diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/formats/style.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/formats/style.py new file mode 100644 index 0000000000000000000000000000000000000000..987577057e058e7dcc5f37ebdd0a8f6f4a302c20 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/formats/style.py @@ -0,0 +1,4136 @@ +""" +Module for applying conditional formatting to DataFrames and Series. +""" +from __future__ import annotations + +from contextlib import contextmanager +import copy +from functools import partial +import operator +from typing import ( + TYPE_CHECKING, + Any, + Callable, + overload, +) +import warnings + +import numpy as np + +from pandas._config import get_option + +from pandas.compat._optional import import_optional_dependency +from pandas.util._decorators import ( + Substitution, + doc, +) +from pandas.util._exceptions import find_stack_level + +import pandas as pd +from pandas import ( + IndexSlice, + RangeIndex, +) +import pandas.core.common as com +from pandas.core.frame import ( + DataFrame, + Series, +) +from pandas.core.generic import NDFrame +from pandas.core.shared_docs import _shared_docs + +from pandas.io.formats.format import save_to_buffer + +jinja2 = import_optional_dependency("jinja2", extra="DataFrame.style requires jinja2.") + +from pandas.io.formats.style_render import ( + CSSProperties, + CSSStyles, + ExtFormatter, + StylerRenderer, + Subset, + Tooltips, + format_table_styles, + maybe_convert_css_to_tuples, + non_reducing_slice, + refactor_levels, +) + +if TYPE_CHECKING: + from collections.abc import ( + Generator, + Hashable, + Sequence, + ) + + from matplotlib.colors import Colormap + + from pandas._typing import ( + Axis, + AxisInt, + FilePath, + IndexLabel, + IntervalClosedType, + Level, + QuantileInterpolation, + Scalar, + StorageOptions, + WriteBuffer, + WriteExcelBuffer, + ) + + from pandas import ExcelWriter + +try: + import matplotlib as mpl + import matplotlib.pyplot as plt + + has_mpl = True +except ImportError: + has_mpl = False + + +@contextmanager +def _mpl(func: Callable) -> Generator[tuple[Any, Any], None, None]: + if has_mpl: + yield plt, mpl + else: + raise ImportError(f"{func.__name__} requires matplotlib.") + + +#### +# Shared Doc Strings + +subset_args = """subset : label, array-like, IndexSlice, optional + A valid 2d input to `DataFrame.loc[]`, or, in the case of a 1d input + or single key, to `DataFrame.loc[:, ]` where the columns are + prioritised, to limit ``data`` to *before* applying the function.""" + +properties_args = """props : str, default None + CSS properties to use for highlighting. If ``props`` is given, ``color`` + is not used.""" + +coloring_args = """color : str, default '{default}' + Background color to use for highlighting.""" + +buffering_args = """buf : str, path object, file-like object, optional + String, path object (implementing ``os.PathLike[str]``), or file-like + object implementing a string ``write()`` function. If ``None``, the result is + returned as a string.""" + +encoding_args = """encoding : str, optional + Character encoding setting for file output (and meta tags if available). + Defaults to ``pandas.options.styler.render.encoding`` value of "utf-8".""" + +# +### + + +class Styler(StylerRenderer): + r""" + Helps style a DataFrame or Series according to the data with HTML and CSS. + + Parameters + ---------- + data : Series or DataFrame + Data to be styled - either a Series or DataFrame. + precision : int, optional + Precision to round floats to. If not given defaults to + ``pandas.options.styler.format.precision``. + + .. versionchanged:: 1.4.0 + table_styles : list-like, default None + List of {selector: (attr, value)} dicts; see Notes. + uuid : str, default None + A unique identifier to avoid CSS collisions; generated automatically. + caption : str, tuple, default None + String caption to attach to the table. Tuple only used for LaTeX dual captions. + table_attributes : str, default None + Items that show up in the opening ```` tag + in addition to automatic (by default) id. + cell_ids : bool, default True + If True, each cell will have an ``id`` attribute in their HTML tag. + The ``id`` takes the form ``T__row_col`` + where ```` is the unique identifier, ```` is the row + number and ```` is the column number. + na_rep : str, optional + Representation for missing values. + If ``na_rep`` is None, no special formatting is applied, and falls back to + ``pandas.options.styler.format.na_rep``. + + uuid_len : int, default 5 + If ``uuid`` is not specified, the length of the ``uuid`` to randomly generate + expressed in hex characters, in range [0, 32]. + decimal : str, optional + Character used as decimal separator for floats, complex and integers. If not + given uses ``pandas.options.styler.format.decimal``. + + .. versionadded:: 1.3.0 + + thousands : str, optional, default None + Character used as thousands separator for floats, complex and integers. If not + given uses ``pandas.options.styler.format.thousands``. + + .. versionadded:: 1.3.0 + + escape : str, optional + Use 'html' to replace the characters ``&``, ``<``, ``>``, ``'``, and ``"`` + in cell display string with HTML-safe sequences. + Use 'latex' to replace the characters ``&``, ``%``, ``$``, ``#``, ``_``, + ``{``, ``}``, ``~``, ``^``, and ``\`` in the cell display string with + LaTeX-safe sequences. Use 'latex-math' to replace the characters + the same way as in 'latex' mode, except for math substrings, + which either are surrounded by two characters ``$`` or start with + the character ``\(`` and end with ``\)``. + If not given uses ``pandas.options.styler.format.escape``. + + .. versionadded:: 1.3.0 + formatter : str, callable, dict, optional + Object to define how values are displayed. See ``Styler.format``. If not given + uses ``pandas.options.styler.format.formatter``. + + .. versionadded:: 1.4.0 + + Attributes + ---------- + env : Jinja2 jinja2.Environment + template_html : Jinja2 Template + template_html_table : Jinja2 Template + template_html_style : Jinja2 Template + template_latex : Jinja2 Template + loader : Jinja2 Loader + + See Also + -------- + DataFrame.style : Return a Styler object containing methods for building + a styled HTML representation for the DataFrame. + + Notes + ----- + Most styling will be done by passing style functions into + ``Styler.apply`` or ``Styler.map``. Style functions should + return values with strings containing CSS ``'attr: value'`` that will + be applied to the indicated cells. + + If using in the Jupyter notebook, Styler has defined a ``_repr_html_`` + to automatically render itself. Otherwise call Styler.to_html to get + the generated HTML. + + CSS classes are attached to the generated HTML + + * Index and Column names include ``index_name`` and ``level`` + where `k` is its level in a MultiIndex + * Index label cells include + + * ``row_heading`` + * ``row`` where `n` is the numeric position of the row + * ``level`` where `k` is the level in a MultiIndex + + * Column label cells include + * ``col_heading`` + * ``col`` where `n` is the numeric position of the column + * ``level`` where `k` is the level in a MultiIndex + + * Blank cells include ``blank`` + * Data cells include ``data`` + * Trimmed cells include ``col_trim`` or ``row_trim``. + + Any, or all, or these classes can be renamed by using the ``css_class_names`` + argument in ``Styler.set_table_classes``, giving a value such as + *{"row": "MY_ROW_CLASS", "col_trim": "", "row_trim": ""}*. + + Examples + -------- + >>> df = pd.DataFrame([[1.0, 2.0, 3.0], [4, 5, 6]], index=['a', 'b'], + ... columns=['A', 'B', 'C']) + >>> pd.io.formats.style.Styler(df, precision=2, + ... caption="My table") # doctest: +SKIP + + Please see: + `Table Visualization <../../user_guide/style.ipynb>`_ for more examples. + """ + + def __init__( + self, + data: DataFrame | Series, + precision: int | None = None, + table_styles: CSSStyles | None = None, + uuid: str | None = None, + caption: str | tuple | list | None = None, + table_attributes: str | None = None, + cell_ids: bool = True, + na_rep: str | None = None, + uuid_len: int = 5, + decimal: str | None = None, + thousands: str | None = None, + escape: str | None = None, + formatter: ExtFormatter | None = None, + ) -> None: + super().__init__( + data=data, + uuid=uuid, + uuid_len=uuid_len, + table_styles=table_styles, + table_attributes=table_attributes, + caption=caption, + cell_ids=cell_ids, + precision=precision, + ) + + # validate ordered args + thousands = thousands or get_option("styler.format.thousands") + decimal = decimal or get_option("styler.format.decimal") + na_rep = na_rep or get_option("styler.format.na_rep") + escape = escape or get_option("styler.format.escape") + formatter = formatter or get_option("styler.format.formatter") + # precision is handled by superclass as default for performance + + self.format( + formatter=formatter, + precision=precision, + na_rep=na_rep, + escape=escape, + decimal=decimal, + thousands=thousands, + ) + + def concat(self, other: Styler) -> Styler: + """ + Append another Styler to combine the output into a single table. + + .. versionadded:: 1.5.0 + + Parameters + ---------- + other : Styler + The other Styler object which has already been styled and formatted. The + data for this Styler must have the same columns as the original, and the + number of index levels must also be the same to render correctly. + + Returns + ------- + Styler + + Notes + ----- + The purpose of this method is to extend existing styled dataframes with other + metrics that may be useful but may not conform to the original's structure. + For example adding a sub total row, or displaying metrics such as means, + variance or counts. + + Styles that are applied using the ``apply``, ``map``, ``apply_index`` + and ``map_index``, and formatting applied with ``format`` and + ``format_index`` will be preserved. + + .. warning:: + Only the output methods ``to_html``, ``to_string`` and ``to_latex`` + currently work with concatenated Stylers. + + Other output methods, including ``to_excel``, **do not** work with + concatenated Stylers. + + The following should be noted: + + - ``table_styles``, ``table_attributes``, ``caption`` and ``uuid`` are all + inherited from the original Styler and not ``other``. + - hidden columns and hidden index levels will be inherited from the + original Styler + - ``css`` will be inherited from the original Styler, and the value of + keys ``data``, ``row_heading`` and ``row`` will be prepended with + ``foot0_``. If more concats are chained, their styles will be prepended + with ``foot1_``, ''foot_2'', etc., and if a concatenated style have + another concatanated style, the second style will be prepended with + ``foot{parent}_foot{child}_``. + + A common use case is to concatenate user defined functions with + ``DataFrame.agg`` or with described statistics via ``DataFrame.describe``. + See examples. + + Examples + -------- + A common use case is adding totals rows, or otherwise, via methods calculated + in ``DataFrame.agg``. + + >>> df = pd.DataFrame([[4, 6], [1, 9], [3, 4], [5, 5], [9, 6]], + ... columns=["Mike", "Jim"], + ... index=["Mon", "Tue", "Wed", "Thurs", "Fri"]) + >>> styler = df.style.concat(df.agg(["sum"]).style) # doctest: +SKIP + + .. figure:: ../../_static/style/footer_simple.png + + Since the concatenated object is a Styler the existing functionality can be + used to conditionally format it as well as the original. + + >>> descriptors = df.agg(["sum", "mean", lambda s: s.dtype]) + >>> descriptors.index = ["Total", "Average", "dtype"] + >>> other = (descriptors.style + ... .highlight_max(axis=1, subset=(["Total", "Average"], slice(None))) + ... .format(subset=("Average", slice(None)), precision=2, decimal=",") + ... .map(lambda v: "font-weight: bold;")) + >>> styler = (df.style + ... .highlight_max(color="salmon") + ... .set_table_styles([{"selector": ".foot_row0", + ... "props": "border-top: 1px solid black;"}])) + >>> styler.concat(other) # doctest: +SKIP + + .. figure:: ../../_static/style/footer_extended.png + + When ``other`` has fewer index levels than the original Styler it is possible + to extend the index in ``other``, with placeholder levels. + + >>> df = pd.DataFrame([[1], [2]], + ... index=pd.MultiIndex.from_product([[0], [1, 2]])) + >>> descriptors = df.agg(["sum"]) + >>> descriptors.index = pd.MultiIndex.from_product([[""], descriptors.index]) + >>> df.style.concat(descriptors.style) # doctest: +SKIP + """ + if not isinstance(other, Styler): + raise TypeError("`other` must be of type `Styler`") + if not self.data.columns.equals(other.data.columns): + raise ValueError("`other.data` must have same columns as `Styler.data`") + if not self.data.index.nlevels == other.data.index.nlevels: + raise ValueError( + "number of index levels must be same in `other` " + "as in `Styler`. See documentation for suggestions." + ) + self.concatenated.append(other) + return self + + def _repr_html_(self) -> str | None: + """ + Hooks into Jupyter notebook rich display system, which calls _repr_html_ by + default if an object is returned at the end of a cell. + """ + if get_option("styler.render.repr") == "html": + return self.to_html() + return None + + def _repr_latex_(self) -> str | None: + if get_option("styler.render.repr") == "latex": + return self.to_latex() + return None + + def set_tooltips( + self, + ttips: DataFrame, + props: CSSProperties | None = None, + css_class: str | None = None, + ) -> Styler: + """ + Set the DataFrame of strings on ``Styler`` generating ``:hover`` tooltips. + + These string based tooltips are only applicable to ``" in result + result = styler.to_html() + assert "" not in result + + +def test_block_names(tpl_style, tpl_table): + # catch accidental removal of a block + expected_style = { + "before_style", + "style", + "table_styles", + "before_cellstyle", + "cellstyle", + } + expected_table = { + "before_table", + "table", + "caption", + "thead", + "tbody", + "after_table", + "before_head_rows", + "head_tr", + "after_head_rows", + "before_rows", + "tr", + "after_rows", + } + result1 = set(tpl_style.blocks) + assert result1 == expected_style + + result2 = set(tpl_table.blocks) + assert result2 == expected_table + + +def test_from_custom_template_table(tmpdir): + p = tmpdir.mkdir("tpl").join("myhtml_table.tpl") + p.write( + dedent( + """\ + {% extends "html_table.tpl" %} + {% block table %} +

{{custom_title}}

+ {{ super() }} + {% endblock table %}""" + ) + ) + result = Styler.from_custom_template(str(tmpdir.join("tpl")), "myhtml_table.tpl") + assert issubclass(result, Styler) + assert result.env is not Styler.env + assert result.template_html_table is not Styler.template_html_table + styler = result(DataFrame({"A": [1, 2]})) + assert "

My Title

\n\n\n + {{ super() }} + {% endblock style %}""" + ) + ) + result = Styler.from_custom_template( + str(tmpdir.join("tpl")), html_style="myhtml_style.tpl" + ) + assert issubclass(result, Styler) + assert result.env is not Styler.env + assert result.template_html_style is not Styler.template_html_style + styler = result(DataFrame({"A": [1, 2]})) + assert '\n\nfull cap" in styler.to_html() + + +@pytest.mark.parametrize("index", [False, True]) +@pytest.mark.parametrize("columns", [False, True]) +@pytest.mark.parametrize("index_name", [True, False]) +def test_sticky_basic(styler, index, columns, index_name): + if index_name: + styler.index.name = "some text" + if index: + styler.set_sticky(axis=0) + if columns: + styler.set_sticky(axis=1) + + left_css = ( + "#T_ {0} {{\n position: sticky;\n background-color: inherit;\n" + " left: 0px;\n z-index: {1};\n}}" + ) + top_css = ( + "#T_ {0} {{\n position: sticky;\n background-color: inherit;\n" + " top: {1}px;\n z-index: {2};\n{3}}}" + ) + + res = styler.set_uuid("").to_html() + + # test index stickys over thead and tbody + assert (left_css.format("thead tr th:nth-child(1)", "3 !important") in res) is index + assert (left_css.format("tbody tr th:nth-child(1)", "1") in res) is index + + # test column stickys including if name row + assert ( + top_css.format("thead tr:nth-child(1) th", "0", "2", " height: 25px;\n") in res + ) is (columns and index_name) + assert ( + top_css.format("thead tr:nth-child(2) th", "25", "2", " height: 25px;\n") + in res + ) is (columns and index_name) + assert (top_css.format("thead tr:nth-child(1) th", "0", "2", "") in res) is ( + columns and not index_name + ) + + +@pytest.mark.parametrize("index", [False, True]) +@pytest.mark.parametrize("columns", [False, True]) +def test_sticky_mi(styler_mi, index, columns): + if index: + styler_mi.set_sticky(axis=0) + if columns: + styler_mi.set_sticky(axis=1) + + left_css = ( + "#T_ {0} {{\n position: sticky;\n background-color: inherit;\n" + " left: {1}px;\n min-width: 75px;\n max-width: 75px;\n z-index: {2};\n}}" + ) + top_css = ( + "#T_ {0} {{\n position: sticky;\n background-color: inherit;\n" + " top: {1}px;\n height: 25px;\n z-index: {2};\n}}" + ) + + res = styler_mi.set_uuid("").to_html() + + # test the index stickys for thead and tbody over both levels + assert ( + left_css.format("thead tr th:nth-child(1)", "0", "3 !important") in res + ) is index + assert (left_css.format("tbody tr th.level0", "0", "1") in res) is index + assert ( + left_css.format("thead tr th:nth-child(2)", "75", "3 !important") in res + ) is index + assert (left_css.format("tbody tr th.level1", "75", "1") in res) is index + + # test the column stickys for each level row + assert (top_css.format("thead tr:nth-child(1) th", "0", "2") in res) is columns + assert (top_css.format("thead tr:nth-child(2) th", "25", "2") in res) is columns + + +@pytest.mark.parametrize("index", [False, True]) +@pytest.mark.parametrize("columns", [False, True]) +@pytest.mark.parametrize("levels", [[1], ["one"], "one"]) +def test_sticky_levels(styler_mi, index, columns, levels): + styler_mi.index.names, styler_mi.columns.names = ["zero", "one"], ["zero", "one"] + if index: + styler_mi.set_sticky(axis=0, levels=levels) + if columns: + styler_mi.set_sticky(axis=1, levels=levels) + + left_css = ( + "#T_ {0} {{\n position: sticky;\n background-color: inherit;\n" + " left: {1}px;\n min-width: 75px;\n max-width: 75px;\n z-index: {2};\n}}" + ) + top_css = ( + "#T_ {0} {{\n position: sticky;\n background-color: inherit;\n" + " top: {1}px;\n height: 25px;\n z-index: {2};\n}}" + ) + + res = styler_mi.set_uuid("").to_html() + + # test no sticking of level0 + assert "#T_ thead tr th:nth-child(1)" not in res + assert "#T_ tbody tr th.level0" not in res + assert "#T_ thead tr:nth-child(1) th" not in res + + # test sticking level1 + assert ( + left_css.format("thead tr th:nth-child(2)", "0", "3 !important") in res + ) is index + assert (left_css.format("tbody tr th.level1", "0", "1") in res) is index + assert (top_css.format("thead tr:nth-child(2) th", "0", "2") in res) is columns + + +def test_sticky_raises(styler): + with pytest.raises(ValueError, match="No axis named bad for object type DataFrame"): + styler.set_sticky(axis="bad") + + +@pytest.mark.parametrize( + "sparse_index, sparse_columns", + [(True, True), (True, False), (False, True), (False, False)], +) +def test_sparse_options(sparse_index, sparse_columns): + cidx = MultiIndex.from_tuples([("Z", "a"), ("Z", "b"), ("Y", "c")]) + ridx = MultiIndex.from_tuples([("A", "a"), ("A", "b"), ("B", "c")]) + df = DataFrame([[1, 2, 3], [4, 5, 6], [7, 8, 9]], index=ridx, columns=cidx) + styler = df.style + + default_html = styler.to_html() # defaults under pd.options to (True , True) + + with option_context( + "styler.sparse.index", sparse_index, "styler.sparse.columns", sparse_columns + ): + html1 = styler.to_html() + assert (html1 == default_html) is (sparse_index and sparse_columns) + html2 = styler.to_html(sparse_index=sparse_index, sparse_columns=sparse_columns) + assert html1 == html2 + + +@pytest.mark.parametrize("index", [True, False]) +@pytest.mark.parametrize("columns", [True, False]) +def test_map_header_cell_ids(styler, index, columns): + # GH 41893 + func = lambda v: "attr: val;" + styler.uuid, styler.cell_ids = "", False + if index: + styler.map_index(func, axis="index") + if columns: + styler.map_index(func, axis="columns") + + result = styler.to_html() + + # test no data cell ids + assert '' in result + assert '' in result + + # test index header ids where needed and css styles + assert ( + '' in result + ) is index + assert ( + '' in result + ) is index + assert ("#T__level0_row0, #T__level0_row1 {\n attr: val;\n}" in result) is index + + # test column header ids where needed and css styles + assert ( + '' in result + ) is columns + assert ("#T__level0_col0 {\n attr: val;\n}" in result) is columns + + +@pytest.mark.parametrize("rows", [True, False]) +@pytest.mark.parametrize("cols", [True, False]) +def test_maximums(styler_mi, rows, cols): + result = styler_mi.to_html( + max_rows=2 if rows else None, + max_columns=2 if cols else None, + ) + + assert ">5" in result # [[0,1], [4,5]] always visible + assert (">8" in result) is not rows # first trimmed vertical element + assert (">2" in result) is not cols # first trimmed horizontal element + + +def test_replaced_css_class_names(): + css = { + "row_heading": "ROWHEAD", + # "col_heading": "COLHEAD", + "index_name": "IDXNAME", + # "col": "COL", + "row": "ROW", + # "col_trim": "COLTRIM", + "row_trim": "ROWTRIM", + "level": "LEVEL", + "data": "DATA", + "blank": "BLANK", + } + midx = MultiIndex.from_product([["a", "b"], ["c", "d"]]) + styler_mi = Styler( + DataFrame(np.arange(16).reshape(4, 4), index=midx, columns=midx), + uuid_len=0, + ).set_table_styles(css_class_names=css) + styler_mi.index.names = ["n1", "n2"] + styler_mi.hide(styler_mi.index[1:], axis=0) + styler_mi.hide(styler_mi.columns[1:], axis=1) + styler_mi.map_index(lambda v: "color: red;", axis=0) + styler_mi.map_index(lambda v: "color: green;", axis=1) + styler_mi.map(lambda v: "color: blue;") + expected = dedent( + """\ + +
`` HTML elements, + and cannot be used for column or index headers. + + .. versionadded:: 1.3.0 + + Parameters + ---------- + ttips : DataFrame + DataFrame containing strings that will be translated to tooltips, mapped + by identical column and index values that must exist on the underlying + Styler data. None, NaN values, and empty strings will be ignored and + not affect the rendered HTML. + props : list-like or str, optional + List of (attr, value) tuples or a valid CSS string. If ``None`` adopts + the internal default values described in notes. + css_class : str, optional + Name of the tooltip class used in CSS, should conform to HTML standards. + Only useful if integrating tooltips with external CSS. If ``None`` uses the + internal default value 'pd-t'. + + Returns + ------- + Styler + + Notes + ----- + Tooltips are created by adding `` to each data cell + and then manipulating the table level CSS to attach pseudo hover and pseudo + after selectors to produce the required the results. + + The default properties for the tooltip CSS class are: + + - visibility: hidden + - position: absolute + - z-index: 1 + - background-color: black + - color: white + - transform: translate(-20px, -20px) + + The property 'visibility: hidden;' is a key prerequisite to the hover + functionality, and should always be included in any manual properties + specification, using the ``props`` argument. + + Tooltips are not designed to be efficient, and can add large amounts of + additional HTML for larger tables, since they also require that ``cell_ids`` + is forced to `True`. + + Examples + -------- + Basic application + + >>> df = pd.DataFrame(data=[[0, 1], [2, 3]]) + >>> ttips = pd.DataFrame( + ... data=[["Min", ""], [np.nan, "Max"]], columns=df.columns, index=df.index + ... ) + >>> s = df.style.set_tooltips(ttips).to_html() + + Optionally controlling the tooltip visual display + + >>> df.style.set_tooltips(ttips, css_class='tt-add', props=[ + ... ('visibility', 'hidden'), + ... ('position', 'absolute'), + ... ('z-index', 1)]) # doctest: +SKIP + >>> df.style.set_tooltips(ttips, css_class='tt-add', + ... props='visibility:hidden; position:absolute; z-index:1;') + ... # doctest: +SKIP + """ + if not self.cell_ids: + # tooltips not optimised for individual cell check. requires reasonable + # redesign and more extensive code for a feature that might be rarely used. + raise NotImplementedError( + "Tooltips can only render with 'cell_ids' is True." + ) + if not ttips.index.is_unique or not ttips.columns.is_unique: + raise KeyError( + "Tooltips render only if `ttips` has unique index and columns." + ) + if self.tooltips is None: # create a default instance if necessary + self.tooltips = Tooltips() + self.tooltips.tt_data = ttips + if props: + self.tooltips.class_properties = props + if css_class: + self.tooltips.class_name = css_class + + return self + + @doc( + NDFrame.to_excel, + klass="Styler", + storage_options=_shared_docs["storage_options"], + storage_options_versionadded="1.5.0", + ) + def to_excel( + self, + excel_writer: FilePath | WriteExcelBuffer | ExcelWriter, + sheet_name: str = "Sheet1", + na_rep: str = "", + float_format: str | None = None, + columns: Sequence[Hashable] | None = None, + header: Sequence[Hashable] | bool = True, + index: bool = True, + index_label: IndexLabel | None = None, + startrow: int = 0, + startcol: int = 0, + engine: str | None = None, + merge_cells: bool = True, + encoding: str | None = None, + inf_rep: str = "inf", + verbose: bool = True, + freeze_panes: tuple[int, int] | None = None, + storage_options: StorageOptions | None = None, + ) -> None: + from pandas.io.formats.excel import ExcelFormatter + + formatter = ExcelFormatter( + self, + na_rep=na_rep, + cols=columns, + header=header, + float_format=float_format, + index=index, + index_label=index_label, + merge_cells=merge_cells, + inf_rep=inf_rep, + ) + formatter.write( + excel_writer, + sheet_name=sheet_name, + startrow=startrow, + startcol=startcol, + freeze_panes=freeze_panes, + engine=engine, + storage_options=storage_options, + ) + + @overload + def to_latex( + self, + buf: FilePath | WriteBuffer[str], + *, + column_format: str | None = ..., + position: str | None = ..., + position_float: str | None = ..., + hrules: bool | None = ..., + clines: str | None = ..., + label: str | None = ..., + caption: str | tuple | None = ..., + sparse_index: bool | None = ..., + sparse_columns: bool | None = ..., + multirow_align: str | None = ..., + multicol_align: str | None = ..., + siunitx: bool = ..., + environment: str | None = ..., + encoding: str | None = ..., + convert_css: bool = ..., + ) -> None: + ... + + @overload + def to_latex( + self, + buf: None = ..., + *, + column_format: str | None = ..., + position: str | None = ..., + position_float: str | None = ..., + hrules: bool | None = ..., + clines: str | None = ..., + label: str | None = ..., + caption: str | tuple | None = ..., + sparse_index: bool | None = ..., + sparse_columns: bool | None = ..., + multirow_align: str | None = ..., + multicol_align: str | None = ..., + siunitx: bool = ..., + environment: str | None = ..., + encoding: str | None = ..., + convert_css: bool = ..., + ) -> str: + ... + + def to_latex( + self, + buf: FilePath | WriteBuffer[str] | None = None, + *, + column_format: str | None = None, + position: str | None = None, + position_float: str | None = None, + hrules: bool | None = None, + clines: str | None = None, + label: str | None = None, + caption: str | tuple | None = None, + sparse_index: bool | None = None, + sparse_columns: bool | None = None, + multirow_align: str | None = None, + multicol_align: str | None = None, + siunitx: bool = False, + environment: str | None = None, + encoding: str | None = None, + convert_css: bool = False, + ) -> str | None: + r""" + Write Styler to a file, buffer or string in LaTeX format. + + .. versionadded:: 1.3.0 + + Parameters + ---------- + buf : str, path object, file-like object, or None, default None + String, path object (implementing ``os.PathLike[str]``), or file-like + object implementing a string ``write()`` function. If None, the result is + returned as a string. + column_format : str, optional + The LaTeX column specification placed in location: + + \\begin{tabular}{} + + Defaults to 'l' for index and + non-numeric data columns, and, for numeric data columns, + to 'r' by default, or 'S' if ``siunitx`` is ``True``. + position : str, optional + The LaTeX positional argument (e.g. 'h!') for tables, placed in location: + + ``\\begin{table}[]``. + position_float : {"centering", "raggedleft", "raggedright"}, optional + The LaTeX float command placed in location: + + \\begin{table}[] + + \\ + + Cannot be used if ``environment`` is "longtable". + hrules : bool + Set to `True` to add \\toprule, \\midrule and \\bottomrule from the + {booktabs} LaTeX package. + Defaults to ``pandas.options.styler.latex.hrules``, which is `False`. + + .. versionchanged:: 1.4.0 + clines : str, optional + Use to control adding \\cline commands for the index labels separation. + Possible values are: + + - `None`: no cline commands are added (default). + - `"all;data"`: a cline is added for every index value extending the + width of the table, including data entries. + - `"all;index"`: as above with lines extending only the width of the + index entries. + - `"skip-last;data"`: a cline is added for each index value except the + last level (which is never sparsified), extending the widtn of the + table. + - `"skip-last;index"`: as above with lines extending only the width of the + index entries. + + .. versionadded:: 1.4.0 + label : str, optional + The LaTeX label included as: \\label{
}. + If tuple, i.e ("full caption", "short caption"), the caption included + as: \\caption[]{}. + sparse_index : bool, optional + Whether to sparsify the display of a hierarchical index. Setting to False + will display each explicit level element in a hierarchical key for each row. + Defaults to ``pandas.options.styler.sparse.index``, which is `True`. + sparse_columns : bool, optional + Whether to sparsify the display of a hierarchical index. Setting to False + will display each explicit level element in a hierarchical key for each + column. Defaults to ``pandas.options.styler.sparse.columns``, which + is `True`. + multirow_align : {"c", "t", "b", "naive"}, optional + If sparsifying hierarchical MultiIndexes whether to align text centrally, + at the top or bottom using the multirow package. If not given defaults to + ``pandas.options.styler.latex.multirow_align``, which is `"c"`. + If "naive" is given renders without multirow. + + .. versionchanged:: 1.4.0 + multicol_align : {"r", "c", "l", "naive-l", "naive-r"}, optional + If sparsifying hierarchical MultiIndex columns whether to align text at + the left, centrally, or at the right. If not given defaults to + ``pandas.options.styler.latex.multicol_align``, which is "r". + If a naive option is given renders without multicol. + Pipe decorators can also be added to non-naive values to draw vertical + rules, e.g. "\|r" will draw a rule on the left side of right aligned merged + cells. + + .. versionchanged:: 1.4.0 + siunitx : bool, default False + Set to ``True`` to structure LaTeX compatible with the {siunitx} package. + environment : str, optional + If given, the environment that will replace 'table' in ``\\begin{table}``. + If 'longtable' is specified then a more suitable template is + rendered. If not given defaults to + ``pandas.options.styler.latex.environment``, which is `None`. + + .. versionadded:: 1.4.0 + encoding : str, optional + Character encoding setting. Defaults + to ``pandas.options.styler.render.encoding``, which is "utf-8". + convert_css : bool, default False + Convert simple cell-styles from CSS to LaTeX format. Any CSS not found in + conversion table is dropped. A style can be forced by adding option + `--latex`. See notes. + + Returns + ------- + str or None + If `buf` is None, returns the result as a string. Otherwise returns `None`. + + See Also + -------- + Styler.format: Format the text display value of cells. + + Notes + ----- + **Latex Packages** + + For the following features we recommend the following LaTeX inclusions: + + ===================== ========================================================== + Feature Inclusion + ===================== ========================================================== + sparse columns none: included within default {tabular} environment + sparse rows \\usepackage{multirow} + hrules \\usepackage{booktabs} + colors \\usepackage[table]{xcolor} + siunitx \\usepackage{siunitx} + bold (with siunitx) | \\usepackage{etoolbox} + | \\robustify\\bfseries + | \\sisetup{detect-all = true} *(within {document})* + italic (with siunitx) | \\usepackage{etoolbox} + | \\robustify\\itshape + | \\sisetup{detect-all = true} *(within {document})* + environment \\usepackage{longtable} if arg is "longtable" + | or any other relevant environment package + hyperlinks \\usepackage{hyperref} + ===================== ========================================================== + + **Cell Styles** + + LaTeX styling can only be rendered if the accompanying styling functions have + been constructed with appropriate LaTeX commands. All styling + functionality is built around the concept of a CSS ``(, )`` + pair (see `Table Visualization <../../user_guide/style.ipynb>`_), and this + should be replaced by a LaTeX + ``(, )`` approach. Each cell will be styled individually + using nested LaTeX commands with their accompanied options. + + For example the following code will highlight and bold a cell in HTML-CSS: + + >>> df = pd.DataFrame([[1,2], [3,4]]) + >>> s = df.style.highlight_max(axis=None, + ... props='background-color:red; font-weight:bold;') + >>> s.to_html() # doctest: +SKIP + + The equivalent using LaTeX only commands is the following: + + >>> s = df.style.highlight_max(axis=None, + ... props='cellcolor:{red}; bfseries: ;') + >>> s.to_latex() # doctest: +SKIP + + Internally these structured LaTeX ``(, )`` pairs + are translated to the + ``display_value`` with the default structure: + ``\ ``. + Where there are multiple commands the latter is nested recursively, so that + the above example highlighted cell is rendered as + ``\cellcolor{red} \bfseries 4``. + + Occasionally this format does not suit the applied command, or + combination of LaTeX packages that is in use, so additional flags can be + added to the ````, within the tuple, to result in different + positions of required braces (the **default** being the same as ``--nowrap``): + + =================================== ============================================ + Tuple Format Output Structure + =================================== ============================================ + (,) \\ + (, ``--nowrap``) \\ + (, ``--rwrap``) \\{} + (, ``--wrap``) {\\ } + (, ``--lwrap``) {\\} + (, ``--dwrap``) {\\}{} + =================================== ============================================ + + For example the `textbf` command for font-weight + should always be used with `--rwrap` so ``('textbf', '--rwrap')`` will render a + working cell, wrapped with braces, as ``\textbf{}``. + + A more comprehensive example is as follows: + + >>> df = pd.DataFrame([[1, 2.2, "dogs"], [3, 4.4, "cats"], [2, 6.6, "cows"]], + ... index=["ix1", "ix2", "ix3"], + ... columns=["Integers", "Floats", "Strings"]) + >>> s = df.style.highlight_max( + ... props='cellcolor:[HTML]{FFFF00}; color:{red};' + ... 'textit:--rwrap; textbf:--rwrap;' + ... ) + >>> s.to_latex() # doctest: +SKIP + + .. figure:: ../../_static/style/latex_1.png + + **Table Styles** + + Internally Styler uses its ``table_styles`` object to parse the + ``column_format``, ``position``, ``position_float``, and ``label`` + input arguments. These arguments are added to table styles in the format: + + .. code-block:: python + + set_table_styles([ + {"selector": "column_format", "props": f":{column_format};"}, + {"selector": "position", "props": f":{position};"}, + {"selector": "position_float", "props": f":{position_float};"}, + {"selector": "label", "props": f":{{{label.replace(':','§')}}};"} + ], overwrite=False) + + Exception is made for the ``hrules`` argument which, in fact, controls all three + commands: ``toprule``, ``bottomrule`` and ``midrule`` simultaneously. Instead of + setting ``hrules`` to ``True``, it is also possible to set each + individual rule definition, by manually setting the ``table_styles``, + for example below we set a regular ``toprule``, set an ``hline`` for + ``bottomrule`` and exclude the ``midrule``: + + .. code-block:: python + + set_table_styles([ + {'selector': 'toprule', 'props': ':toprule;'}, + {'selector': 'bottomrule', 'props': ':hline;'}, + ], overwrite=False) + + If other ``commands`` are added to table styles they will be detected, and + positioned immediately above the '\\begin{tabular}' command. For example to + add odd and even row coloring, from the {colortbl} package, in format + ``\rowcolors{1}{pink}{red}``, use: + + .. code-block:: python + + set_table_styles([ + {'selector': 'rowcolors', 'props': ':{1}{pink}{red};'} + ], overwrite=False) + + A more comprehensive example using these arguments is as follows: + + >>> df.columns = pd.MultiIndex.from_tuples([ + ... ("Numeric", "Integers"), + ... ("Numeric", "Floats"), + ... ("Non-Numeric", "Strings") + ... ]) + >>> df.index = pd.MultiIndex.from_tuples([ + ... ("L0", "ix1"), ("L0", "ix2"), ("L1", "ix3") + ... ]) + >>> s = df.style.highlight_max( + ... props='cellcolor:[HTML]{FFFF00}; color:{red}; itshape:; bfseries:;' + ... ) + >>> s.to_latex( + ... column_format="rrrrr", position="h", position_float="centering", + ... hrules=True, label="table:5", caption="Styled LaTeX Table", + ... multirow_align="t", multicol_align="r" + ... ) # doctest: +SKIP + + .. figure:: ../../_static/style/latex_2.png + + **Formatting** + + To format values :meth:`Styler.format` should be used prior to calling + `Styler.to_latex`, as well as other methods such as :meth:`Styler.hide` + for example: + + >>> s.clear() + >>> s.table_styles = [] + >>> s.caption = None + >>> s.format({ + ... ("Numeric", "Integers"): '\${}', + ... ("Numeric", "Floats"): '{:.3f}', + ... ("Non-Numeric", "Strings"): str.upper + ... }) # doctest: +SKIP + Numeric Non-Numeric + Integers Floats Strings + L0 ix1 $1 2.200 DOGS + ix2 $3 4.400 CATS + L1 ix3 $2 6.600 COWS + + >>> s.to_latex() # doctest: +SKIP + \begin{tabular}{llrrl} + {} & {} & \multicolumn{2}{r}{Numeric} & {Non-Numeric} \\ + {} & {} & {Integers} & {Floats} & {Strings} \\ + \multirow[c]{2}{*}{L0} & ix1 & \\$1 & 2.200 & DOGS \\ + & ix2 & \$3 & 4.400 & CATS \\ + L1 & ix3 & \$2 & 6.600 & COWS \\ + \end{tabular} + + **CSS Conversion** + + This method can convert a Styler constructured with HTML-CSS to LaTeX using + the following limited conversions. + + ================== ==================== ============= ========================== + CSS Attribute CSS value LaTeX Command LaTeX Options + ================== ==================== ============= ========================== + font-weight | bold | bfseries + | bolder | bfseries + font-style | italic | itshape + | oblique | slshape + background-color | red cellcolor | {red}--lwrap + | #fe01ea | [HTML]{FE01EA}--lwrap + | #f0e | [HTML]{FF00EE}--lwrap + | rgb(128,255,0) | [rgb]{0.5,1,0}--lwrap + | rgba(128,0,0,0.5) | [rgb]{0.5,0,0}--lwrap + | rgb(25%,255,50%) | [rgb]{0.25,1,0.5}--lwrap + color | red color | {red} + | #fe01ea | [HTML]{FE01EA} + | #f0e | [HTML]{FF00EE} + | rgb(128,255,0) | [rgb]{0.5,1,0} + | rgba(128,0,0,0.5) | [rgb]{0.5,0,0} + | rgb(25%,255,50%) | [rgb]{0.25,1,0.5} + ================== ==================== ============= ========================== + + It is also possible to add user-defined LaTeX only styles to a HTML-CSS Styler + using the ``--latex`` flag, and to add LaTeX parsing options that the + converter will detect within a CSS-comment. + + >>> df = pd.DataFrame([[1]]) + >>> df.style.set_properties( + ... **{"font-weight": "bold /* --dwrap */", "Huge": "--latex--rwrap"} + ... ).to_latex(convert_css=True) # doctest: +SKIP + \begin{tabular}{lr} + {} & {0} \\ + 0 & {\bfseries}{\Huge{1}} \\ + \end{tabular} + + Examples + -------- + Below we give a complete step by step example adding some advanced features + and noting some common gotchas. + + First we create the DataFrame and Styler as usual, including MultiIndex rows + and columns, which allow for more advanced formatting options: + + >>> cidx = pd.MultiIndex.from_arrays([ + ... ["Equity", "Equity", "Equity", "Equity", + ... "Stats", "Stats", "Stats", "Stats", "Rating"], + ... ["Energy", "Energy", "Consumer", "Consumer", "", "", "", "", ""], + ... ["BP", "Shell", "H&M", "Unilever", + ... "Std Dev", "Variance", "52w High", "52w Low", ""] + ... ]) + >>> iidx = pd.MultiIndex.from_arrays([ + ... ["Equity", "Equity", "Equity", "Equity"], + ... ["Energy", "Energy", "Consumer", "Consumer"], + ... ["BP", "Shell", "H&M", "Unilever"] + ... ]) + >>> styler = pd.DataFrame([ + ... [1, 0.8, 0.66, 0.72, 32.1678, 32.1678**2, 335.12, 240.89, "Buy"], + ... [0.8, 1.0, 0.69, 0.79, 1.876, 1.876**2, 14.12, 19.78, "Hold"], + ... [0.66, 0.69, 1.0, 0.86, 7, 7**2, 210.9, 140.6, "Buy"], + ... [0.72, 0.79, 0.86, 1.0, 213.76, 213.76**2, 2807, 3678, "Sell"], + ... ], columns=cidx, index=iidx).style + + Second we will format the display and, since our table is quite wide, will + hide the repeated level-0 of the index: + + >>> (styler.format(subset="Equity", precision=2) + ... .format(subset="Stats", precision=1, thousands=",") + ... .format(subset="Rating", formatter=str.upper) + ... .format_index(escape="latex", axis=1) + ... .format_index(escape="latex", axis=0) + ... .hide(level=0, axis=0)) # doctest: +SKIP + + Note that one of the string entries of the index and column headers is "H&M". + Without applying the `escape="latex"` option to the `format_index` method the + resultant LaTeX will fail to render, and the error returned is quite + difficult to debug. Using the appropriate escape the "&" is converted to "\\&". + + Thirdly we will apply some (CSS-HTML) styles to our object. We will use a + builtin method and also define our own method to highlight the stock + recommendation: + + >>> def rating_color(v): + ... if v == "Buy": color = "#33ff85" + ... elif v == "Sell": color = "#ff5933" + ... else: color = "#ffdd33" + ... return f"color: {color}; font-weight: bold;" + >>> (styler.background_gradient(cmap="inferno", subset="Equity", vmin=0, vmax=1) + ... .map(rating_color, subset="Rating")) # doctest: +SKIP + + All the above styles will work with HTML (see below) and LaTeX upon conversion: + + .. figure:: ../../_static/style/latex_stocks_html.png + + However, we finally want to add one LaTeX only style + (from the {graphicx} package), that is not easy to convert from CSS and + pandas does not support it. Notice the `--latex` flag used here, + as well as `--rwrap` to ensure this is formatted correctly and + not ignored upon conversion. + + >>> styler.map_index( + ... lambda v: "rotatebox:{45}--rwrap--latex;", level=2, axis=1 + ... ) # doctest: +SKIP + + Finally we render our LaTeX adding in other options as required: + + >>> styler.to_latex( + ... caption="Selected stock correlation and simple statistics.", + ... clines="skip-last;data", + ... convert_css=True, + ... position_float="centering", + ... multicol_align="|c|", + ... hrules=True, + ... ) # doctest: +SKIP + \begin{table} + \centering + \caption{Selected stock correlation and simple statistics.} + \begin{tabular}{llrrrrrrrrl} + \toprule + & & \multicolumn{4}{|c|}{Equity} & \multicolumn{4}{|c|}{Stats} & Rating \\ + & & \multicolumn{2}{|c|}{Energy} & \multicolumn{2}{|c|}{Consumer} & + \multicolumn{4}{|c|}{} & \\ + & & \rotatebox{45}{BP} & \rotatebox{45}{Shell} & \rotatebox{45}{H\&M} & + \rotatebox{45}{Unilever} & \rotatebox{45}{Std Dev} & \rotatebox{45}{Variance} & + \rotatebox{45}{52w High} & \rotatebox{45}{52w Low} & \rotatebox{45}{} \\ + \midrule + \multirow[c]{2}{*}{Energy} & BP & {\cellcolor[HTML]{FCFFA4}} + \color[HTML]{000000} 1.00 & {\cellcolor[HTML]{FCA50A}} \color[HTML]{000000} + 0.80 & {\cellcolor[HTML]{EB6628}} \color[HTML]{F1F1F1} 0.66 & + {\cellcolor[HTML]{F68013}} \color[HTML]{F1F1F1} 0.72 & 32.2 & 1,034.8 & 335.1 + & 240.9 & \color[HTML]{33FF85} \bfseries BUY \\ + & Shell & {\cellcolor[HTML]{FCA50A}} \color[HTML]{000000} 0.80 & + {\cellcolor[HTML]{FCFFA4}} \color[HTML]{000000} 1.00 & + {\cellcolor[HTML]{F1731D}} \color[HTML]{F1F1F1} 0.69 & + {\cellcolor[HTML]{FCA108}} \color[HTML]{000000} 0.79 & 1.9 & 3.5 & 14.1 & + 19.8 & \color[HTML]{FFDD33} \bfseries HOLD \\ + \cline{1-11} + \multirow[c]{2}{*}{Consumer} & H\&M & {\cellcolor[HTML]{EB6628}} + \color[HTML]{F1F1F1} 0.66 & {\cellcolor[HTML]{F1731D}} \color[HTML]{F1F1F1} + 0.69 & {\cellcolor[HTML]{FCFFA4}} \color[HTML]{000000} 1.00 & + {\cellcolor[HTML]{FAC42A}} \color[HTML]{000000} 0.86 & 7.0 & 49.0 & 210.9 & + 140.6 & \color[HTML]{33FF85} \bfseries BUY \\ + & Unilever & {\cellcolor[HTML]{F68013}} \color[HTML]{F1F1F1} 0.72 & + {\cellcolor[HTML]{FCA108}} \color[HTML]{000000} 0.79 & + {\cellcolor[HTML]{FAC42A}} \color[HTML]{000000} 0.86 & + {\cellcolor[HTML]{FCFFA4}} \color[HTML]{000000} 1.00 & 213.8 & 45,693.3 & + 2,807.0 & 3,678.0 & \color[HTML]{FF5933} \bfseries SELL \\ + \cline{1-11} + \bottomrule + \end{tabular} + \end{table} + + .. figure:: ../../_static/style/latex_stocks.png + """ + obj = self._copy(deepcopy=True) # manipulate table_styles on obj, not self + + table_selectors = ( + [style["selector"] for style in self.table_styles] + if self.table_styles is not None + else [] + ) + + if column_format is not None: + # add more recent setting to table_styles + obj.set_table_styles( + [{"selector": "column_format", "props": f":{column_format}"}], + overwrite=False, + ) + elif "column_format" in table_selectors: + pass # adopt what has been previously set in table_styles + else: + # create a default: set float, complex, int cols to 'r' ('S'), index to 'l' + _original_columns = self.data.columns + self.data.columns = RangeIndex(stop=len(self.data.columns)) + numeric_cols = self.data._get_numeric_data().columns.to_list() + self.data.columns = _original_columns + column_format = "" + for level in range(self.index.nlevels): + column_format += "" if self.hide_index_[level] else "l" + for ci, _ in enumerate(self.data.columns): + if ci not in self.hidden_columns: + column_format += ( + ("r" if not siunitx else "S") if ci in numeric_cols else "l" + ) + obj.set_table_styles( + [{"selector": "column_format", "props": f":{column_format}"}], + overwrite=False, + ) + + if position: + obj.set_table_styles( + [{"selector": "position", "props": f":{position}"}], + overwrite=False, + ) + + if position_float: + if environment == "longtable": + raise ValueError( + "`position_float` cannot be used in 'longtable' `environment`" + ) + if position_float not in ["raggedright", "raggedleft", "centering"]: + raise ValueError( + f"`position_float` should be one of " + f"'raggedright', 'raggedleft', 'centering', " + f"got: '{position_float}'" + ) + obj.set_table_styles( + [{"selector": "position_float", "props": f":{position_float}"}], + overwrite=False, + ) + + hrules = get_option("styler.latex.hrules") if hrules is None else hrules + if hrules: + obj.set_table_styles( + [ + {"selector": "toprule", "props": ":toprule"}, + {"selector": "midrule", "props": ":midrule"}, + {"selector": "bottomrule", "props": ":bottomrule"}, + ], + overwrite=False, + ) + + if label: + obj.set_table_styles( + [{"selector": "label", "props": f":{{{label.replace(':', '§')}}}"}], + overwrite=False, + ) + + if caption: + obj.set_caption(caption) + + if sparse_index is None: + sparse_index = get_option("styler.sparse.index") + if sparse_columns is None: + sparse_columns = get_option("styler.sparse.columns") + environment = environment or get_option("styler.latex.environment") + multicol_align = multicol_align or get_option("styler.latex.multicol_align") + multirow_align = multirow_align or get_option("styler.latex.multirow_align") + latex = obj._render_latex( + sparse_index=sparse_index, + sparse_columns=sparse_columns, + multirow_align=multirow_align, + multicol_align=multicol_align, + environment=environment, + convert_css=convert_css, + siunitx=siunitx, + clines=clines, + ) + + encoding = ( + (encoding or get_option("styler.render.encoding")) + if isinstance(buf, str) # i.e. a filepath + else encoding + ) + return save_to_buffer(latex, buf=buf, encoding=encoding) + + @overload + def to_html( + self, + buf: FilePath | WriteBuffer[str], + *, + table_uuid: str | None = ..., + table_attributes: str | None = ..., + sparse_index: bool | None = ..., + sparse_columns: bool | None = ..., + bold_headers: bool = ..., + caption: str | None = ..., + max_rows: int | None = ..., + max_columns: int | None = ..., + encoding: str | None = ..., + doctype_html: bool = ..., + exclude_styles: bool = ..., + **kwargs, + ) -> None: + ... + + @overload + def to_html( + self, + buf: None = ..., + *, + table_uuid: str | None = ..., + table_attributes: str | None = ..., + sparse_index: bool | None = ..., + sparse_columns: bool | None = ..., + bold_headers: bool = ..., + caption: str | None = ..., + max_rows: int | None = ..., + max_columns: int | None = ..., + encoding: str | None = ..., + doctype_html: bool = ..., + exclude_styles: bool = ..., + **kwargs, + ) -> str: + ... + + @Substitution(buf=buffering_args, encoding=encoding_args) + def to_html( + self, + buf: FilePath | WriteBuffer[str] | None = None, + *, + table_uuid: str | None = None, + table_attributes: str | None = None, + sparse_index: bool | None = None, + sparse_columns: bool | None = None, + bold_headers: bool = False, + caption: str | None = None, + max_rows: int | None = None, + max_columns: int | None = None, + encoding: str | None = None, + doctype_html: bool = False, + exclude_styles: bool = False, + **kwargs, + ) -> str | None: + """ + Write Styler to a file, buffer or string in HTML-CSS format. + + .. versionadded:: 1.3.0 + + Parameters + ---------- + %(buf)s + table_uuid : str, optional + Id attribute assigned to the HTML element in the format: + + ``
`` + + If not given uses Styler's initially assigned value. + table_attributes : str, optional + Attributes to assign within the `
` HTML element in the format: + + ``
>`` + + If not given defaults to Styler's preexisting value. + sparse_index : bool, optional + Whether to sparsify the display of a hierarchical index. Setting to False + will display each explicit level element in a hierarchical key for each row. + Defaults to ``pandas.options.styler.sparse.index`` value. + + .. versionadded:: 1.4.0 + sparse_columns : bool, optional + Whether to sparsify the display of a hierarchical index. Setting to False + will display each explicit level element in a hierarchical key for each + column. Defaults to ``pandas.options.styler.sparse.columns`` value. + + .. versionadded:: 1.4.0 + bold_headers : bool, optional + Adds "font-weight: bold;" as a CSS property to table style header cells. + + .. versionadded:: 1.4.0 + caption : str, optional + Set, or overwrite, the caption on Styler before rendering. + + .. versionadded:: 1.4.0 + max_rows : int, optional + The maximum number of rows that will be rendered. Defaults to + ``pandas.options.styler.render.max_rows/max_columns``. + + .. versionadded:: 1.4.0 + max_columns : int, optional + The maximum number of columns that will be rendered. Defaults to + ``pandas.options.styler.render.max_columns``, which is None. + + Rows and columns may be reduced if the number of total elements is + large. This value is set to ``pandas.options.styler.render.max_elements``, + which is 262144 (18 bit browser rendering). + + .. versionadded:: 1.4.0 + %(encoding)s + doctype_html : bool, default False + Whether to output a fully structured HTML file including all + HTML elements, or just the core `` +
+ + + + + + + ... + """ + obj = self._copy(deepcopy=True) # manipulate table_styles on obj, not self + + if table_uuid: + obj.set_uuid(table_uuid) + + if table_attributes: + obj.set_table_attributes(table_attributes) + + if sparse_index is None: + sparse_index = get_option("styler.sparse.index") + if sparse_columns is None: + sparse_columns = get_option("styler.sparse.columns") + + if bold_headers: + obj.set_table_styles( + [{"selector": "th", "props": "font-weight: bold;"}], overwrite=False + ) + + if caption is not None: + obj.set_caption(caption) + + # Build HTML string.. + html = obj._render_html( + sparse_index=sparse_index, + sparse_columns=sparse_columns, + max_rows=max_rows, + max_cols=max_columns, + exclude_styles=exclude_styles, + encoding=encoding or get_option("styler.render.encoding"), + doctype_html=doctype_html, + **kwargs, + ) + + return save_to_buffer( + html, buf=buf, encoding=(encoding if buf is not None else None) + ) + + @overload + def to_string( + self, + buf: FilePath | WriteBuffer[str], + *, + encoding: str | None = ..., + sparse_index: bool | None = ..., + sparse_columns: bool | None = ..., + max_rows: int | None = ..., + max_columns: int | None = ..., + delimiter: str = ..., + ) -> None: + ... + + @overload + def to_string( + self, + buf: None = ..., + *, + encoding: str | None = ..., + sparse_index: bool | None = ..., + sparse_columns: bool | None = ..., + max_rows: int | None = ..., + max_columns: int | None = ..., + delimiter: str = ..., + ) -> str: + ... + + @Substitution(buf=buffering_args, encoding=encoding_args) + def to_string( + self, + buf: FilePath | WriteBuffer[str] | None = None, + *, + encoding: str | None = None, + sparse_index: bool | None = None, + sparse_columns: bool | None = None, + max_rows: int | None = None, + max_columns: int | None = None, + delimiter: str = " ", + ) -> str | None: + """ + Write Styler to a file, buffer or string in text format. + + .. versionadded:: 1.5.0 + + Parameters + ---------- + %(buf)s + %(encoding)s + sparse_index : bool, optional + Whether to sparsify the display of a hierarchical index. Setting to False + will display each explicit level element in a hierarchical key for each row. + Defaults to ``pandas.options.styler.sparse.index`` value. + sparse_columns : bool, optional + Whether to sparsify the display of a hierarchical index. Setting to False + will display each explicit level element in a hierarchical key for each + column. Defaults to ``pandas.options.styler.sparse.columns`` value. + max_rows : int, optional + The maximum number of rows that will be rendered. Defaults to + ``pandas.options.styler.render.max_rows``, which is None. + max_columns : int, optional + The maximum number of columns that will be rendered. Defaults to + ``pandas.options.styler.render.max_columns``, which is None. + + Rows and columns may be reduced if the number of total elements is + large. This value is set to ``pandas.options.styler.render.max_elements``, + which is 262144 (18 bit browser rendering). + delimiter : str, default single space + The separator between data elements. + + Returns + ------- + str or None + If `buf` is None, returns the result as a string. Otherwise returns `None`. + + Examples + -------- + >>> df = pd.DataFrame({'A': [1, 2], 'B': [3, 4]}) + >>> df.style.to_string() + ' A B\\n0 1 3\\n1 2 4\\n' + """ + obj = self._copy(deepcopy=True) + + if sparse_index is None: + sparse_index = get_option("styler.sparse.index") + if sparse_columns is None: + sparse_columns = get_option("styler.sparse.columns") + + text = obj._render_string( + sparse_columns=sparse_columns, + sparse_index=sparse_index, + max_rows=max_rows, + max_cols=max_columns, + delimiter=delimiter, + ) + return save_to_buffer( + text, buf=buf, encoding=(encoding if buf is not None else None) + ) + + def set_td_classes(self, classes: DataFrame) -> Styler: + """ + Set the ``class`` attribute of ``' in styler.to_html() + + +def test_rowspan_w3(): + # GH 38533 + df = DataFrame(data=[[1, 2]], index=[["l0", "l0"], ["l1a", "l1b"]]) + styler = Styler(df, uuid="_", cell_ids=False) + assert '' in styler.to_html() + + +def test_styles(styler): + styler.set_uuid("abc") + styler.set_table_styles([{"selector": "td", "props": "color: red;"}]) + result = styler.to_html(doctype_html=True) + expected = dedent( + """\ + + + + + + + +
 AB
`` HTML elements. + + Parameters + ---------- + classes : DataFrame + DataFrame containing strings that will be translated to CSS classes, + mapped by identical column and index key values that must exist on the + underlying Styler data. None, NaN values, and empty strings will + be ignored and not affect the rendered HTML. + + Returns + ------- + Styler + + See Also + -------- + Styler.set_table_styles: Set the table styles included within the ``' + '' + ' ' + ' ' + ' ' + ' ' + ' ' + ' ' + '
0
1
' + """ + if not classes.index.is_unique or not classes.columns.is_unique: + raise KeyError( + "Classes render only if `classes` has unique index and columns." + ) + classes = classes.reindex_like(self.data) + + for r, row_tup in enumerate(classes.itertuples()): + for c, value in enumerate(row_tup[1:]): + if not (pd.isna(value) or value == ""): + self.cell_context[(r, c)] = str(value) + + return self + + def _update_ctx(self, attrs: DataFrame) -> None: + """ + Update the state of the ``Styler`` for data cells. + + Collects a mapping of {index_label: [('', ''), ..]}. + + Parameters + ---------- + attrs : DataFrame + should contain strings of ': ;: ' + Whitespace shouldn't matter and the final trailing ';' shouldn't + matter. + """ + if not self.index.is_unique or not self.columns.is_unique: + raise KeyError( + "`Styler.apply` and `.map` are not compatible " + "with non-unique index or columns." + ) + + for cn in attrs.columns: + j = self.columns.get_loc(cn) + ser = attrs[cn] + for rn, c in ser.items(): + if not c or pd.isna(c): + continue + css_list = maybe_convert_css_to_tuples(c) + i = self.index.get_loc(rn) + self.ctx[(i, j)].extend(css_list) + + def _update_ctx_header(self, attrs: DataFrame, axis: AxisInt) -> None: + """ + Update the state of the ``Styler`` for header cells. + + Collects a mapping of {index_label: [('', ''), ..]}. + + Parameters + ---------- + attrs : Series + Should contain strings of ': ;: ', and an + integer index. + Whitespace shouldn't matter and the final trailing ';' shouldn't + matter. + axis : int + Identifies whether the ctx object being updated is the index or columns + """ + for j in attrs.columns: + ser = attrs[j] + for i, c in ser.items(): + if not c or pd.isna(c): + continue + css_list = maybe_convert_css_to_tuples(c) + if axis == 0: + self.ctx_index[(i, j)].extend(css_list) + else: + self.ctx_columns[(j, i)].extend(css_list) + + def _copy(self, deepcopy: bool = False) -> Styler: + """ + Copies a Styler, allowing for deepcopy or shallow copy + + Copying a Styler aims to recreate a new Styler object which contains the same + data and styles as the original. + + Data dependent attributes [copied and NOT exported]: + - formatting (._display_funcs) + - hidden index values or column values (.hidden_rows, .hidden_columns) + - tooltips + - cell_context (cell css classes) + - ctx (cell css styles) + - caption + - concatenated stylers + + Non-data dependent attributes [copied and exported]: + - css + - hidden index state and hidden columns state (.hide_index_, .hide_columns_) + - table_attributes + - table_styles + - applied styles (_todo) + + """ + # GH 40675, 52728 + styler = type(self)( + self.data, # populates attributes 'data', 'columns', 'index' as shallow + ) + shallow = [ # simple string or boolean immutables + "hide_index_", + "hide_columns_", + "hide_column_names", + "hide_index_names", + "table_attributes", + "cell_ids", + "caption", + "uuid", + "uuid_len", + "template_latex", # also copy templates if these have been customised + "template_html_style", + "template_html_table", + "template_html", + ] + deep = [ # nested lists or dicts + "css", + "concatenated", + "_display_funcs", + "_display_funcs_index", + "_display_funcs_columns", + "hidden_rows", + "hidden_columns", + "ctx", + "ctx_index", + "ctx_columns", + "cell_context", + "_todo", + "table_styles", + "tooltips", + ] + + for attr in shallow: + setattr(styler, attr, getattr(self, attr)) + + for attr in deep: + val = getattr(self, attr) + setattr(styler, attr, copy.deepcopy(val) if deepcopy else val) + + return styler + + def __copy__(self) -> Styler: + return self._copy(deepcopy=False) + + def __deepcopy__(self, memo) -> Styler: + return self._copy(deepcopy=True) + + def clear(self) -> None: + """ + Reset the ``Styler``, removing any previously applied styles. + + Returns None. + + Examples + -------- + >>> df = pd.DataFrame({'A': [1, 2], 'B': [3, np.nan]}) + + After any added style: + + >>> df.style.highlight_null(color='yellow') # doctest: +SKIP + + Remove it with: + + >>> df.style.clear() # doctest: +SKIP + + Please see: + `Table Visualization <../../user_guide/style.ipynb>`_ for more examples. + """ + # create default GH 40675 + clean_copy = Styler(self.data, uuid=self.uuid) + clean_attrs = [a for a in clean_copy.__dict__ if not callable(a)] + self_attrs = [a for a in self.__dict__ if not callable(a)] # maybe more attrs + for attr in clean_attrs: + setattr(self, attr, getattr(clean_copy, attr)) + for attr in set(self_attrs).difference(clean_attrs): + delattr(self, attr) + + def _apply( + self, + func: Callable, + axis: Axis | None = 0, + subset: Subset | None = None, + **kwargs, + ) -> Styler: + subset = slice(None) if subset is None else subset + subset = non_reducing_slice(subset) + data = self.data.loc[subset] + if data.empty: + result = DataFrame() + elif axis is None: + result = func(data, **kwargs) + if not isinstance(result, DataFrame): + if not isinstance(result, np.ndarray): + raise TypeError( + f"Function {repr(func)} must return a DataFrame or ndarray " + f"when passed to `Styler.apply` with axis=None" + ) + if data.shape != result.shape: + raise ValueError( + f"Function {repr(func)} returned ndarray with wrong shape.\n" + f"Result has shape: {result.shape}\n" + f"Expected shape: {data.shape}" + ) + result = DataFrame(result, index=data.index, columns=data.columns) + else: + axis = self.data._get_axis_number(axis) + if axis == 0: + result = data.apply(func, axis=0, **kwargs) + else: + result = data.T.apply(func, axis=0, **kwargs).T # see GH 42005 + + if isinstance(result, Series): + raise ValueError( + f"Function {repr(func)} resulted in the apply method collapsing to a " + f"Series.\nUsually, this is the result of the function returning a " + f"single value, instead of list-like." + ) + msg = ( + f"Function {repr(func)} created invalid {{0}} labels.\nUsually, this is " + f"the result of the function returning a " + f"{'Series' if axis is not None else 'DataFrame'} which contains invalid " + f"labels, or returning an incorrectly shaped, list-like object which " + f"cannot be mapped to labels, possibly due to applying the function along " + f"the wrong axis.\n" + f"Result {{0}} has shape: {{1}}\n" + f"Expected {{0}} shape: {{2}}" + ) + if not all(result.index.isin(data.index)): + raise ValueError(msg.format("index", result.index.shape, data.index.shape)) + if not all(result.columns.isin(data.columns)): + raise ValueError( + msg.format("columns", result.columns.shape, data.columns.shape) + ) + self._update_ctx(result) + return self + + @Substitution(subset=subset_args) + def apply( + self, + func: Callable, + axis: Axis | None = 0, + subset: Subset | None = None, + **kwargs, + ) -> Styler: + """ + Apply a CSS-styling function column-wise, row-wise, or table-wise. + + Updates the HTML representation with the result. + + Parameters + ---------- + func : function + ``func`` should take a Series if ``axis`` in [0,1] and return a list-like + object of same length, or a Series, not necessarily of same length, with + valid index labels considering ``subset``. + ``func`` should take a DataFrame if ``axis`` is ``None`` and return either + an ndarray with the same shape or a DataFrame, not necessarily of the same + shape, with valid index and columns labels considering ``subset``. + + .. versionchanged:: 1.3.0 + + .. versionchanged:: 1.4.0 + + axis : {0 or 'index', 1 or 'columns', None}, default 0 + Apply to each column (``axis=0`` or ``'index'``), to each row + (``axis=1`` or ``'columns'``), or to the entire DataFrame at once + with ``axis=None``. + %(subset)s + **kwargs : dict + Pass along to ``func``. + + Returns + ------- + Styler + + See Also + -------- + Styler.map_index: Apply a CSS-styling function to headers elementwise. + Styler.apply_index: Apply a CSS-styling function to headers level-wise. + Styler.map: Apply a CSS-styling function elementwise. + + Notes + ----- + The elements of the output of ``func`` should be CSS styles as strings, in the + format 'attribute: value; attribute2: value2; ...' or, + if nothing is to be applied to that element, an empty string or ``None``. + + This is similar to ``DataFrame.apply``, except that ``axis=None`` + applies the function to the entire DataFrame at once, + rather than column-wise or row-wise. + + Examples + -------- + >>> def highlight_max(x, color): + ... return np.where(x == np.nanmax(x.to_numpy()), f"color: {color};", None) + >>> df = pd.DataFrame(np.random.randn(5, 2), columns=["A", "B"]) + >>> df.style.apply(highlight_max, color='red') # doctest: +SKIP + >>> df.style.apply(highlight_max, color='blue', axis=1) # doctest: +SKIP + >>> df.style.apply(highlight_max, color='green', axis=None) # doctest: +SKIP + + Using ``subset`` to restrict application to a single column or multiple columns + + >>> df.style.apply(highlight_max, color='red', subset="A") + ... # doctest: +SKIP + >>> df.style.apply(highlight_max, color='red', subset=["A", "B"]) + ... # doctest: +SKIP + + Using a 2d input to ``subset`` to select rows in addition to columns + + >>> df.style.apply(highlight_max, color='red', subset=([0, 1, 2], slice(None))) + ... # doctest: +SKIP + >>> df.style.apply(highlight_max, color='red', subset=(slice(0, 5, 2), "A")) + ... # doctest: +SKIP + + Using a function which returns a Series / DataFrame of unequal length but + containing valid index labels + + >>> df = pd.DataFrame([[1, 2], [3, 4], [4, 6]], index=["A1", "A2", "Total"]) + >>> total_style = pd.Series("font-weight: bold;", index=["Total"]) + >>> df.style.apply(lambda s: total_style) # doctest: +SKIP + + See `Table Visualization <../../user_guide/style.ipynb>`_ user guide for + more details. + """ + self._todo.append( + (lambda instance: getattr(instance, "_apply"), (func, axis, subset), kwargs) + ) + return self + + def _apply_index( + self, + func: Callable, + axis: Axis = 0, + level: Level | list[Level] | None = None, + method: str = "apply", + **kwargs, + ) -> Styler: + axis = self.data._get_axis_number(axis) + obj = self.index if axis == 0 else self.columns + + levels_ = refactor_levels(level, obj) + data = DataFrame(obj.to_list()).loc[:, levels_] + + if method == "apply": + result = data.apply(func, axis=0, **kwargs) + elif method == "map": + result = data.map(func, **kwargs) + + self._update_ctx_header(result, axis) + return self + + @doc( + this="apply", + wise="level-wise", + alt="map", + altwise="elementwise", + func="take a Series and return a string array of the same length", + input_note="the index as a Series, if an Index, or a level of a MultiIndex", + output_note="an identically sized array of CSS styles as strings", + var="s", + ret='np.where(s == "B", "background-color: yellow;", "")', + ret2='["background-color: yellow;" if "x" in v else "" for v in s]', + ) + def apply_index( + self, + func: Callable, + axis: AxisInt | str = 0, + level: Level | list[Level] | None = None, + **kwargs, + ) -> Styler: + """ + Apply a CSS-styling function to the index or column headers, {wise}. + + Updates the HTML representation with the result. + + .. versionadded:: 1.4.0 + + .. versionadded:: 2.1.0 + Styler.applymap_index was deprecated and renamed to Styler.map_index. + + Parameters + ---------- + func : function + ``func`` should {func}. + axis : {{0, 1, "index", "columns"}} + The headers over which to apply the function. + level : int, str, list, optional + If index is MultiIndex the level(s) over which to apply the function. + **kwargs : dict + Pass along to ``func``. + + Returns + ------- + Styler + + See Also + -------- + Styler.{alt}_index: Apply a CSS-styling function to headers {altwise}. + Styler.apply: Apply a CSS-styling function column-wise, row-wise, or table-wise. + Styler.map: Apply a CSS-styling function elementwise. + + Notes + ----- + Each input to ``func`` will be {input_note}. The output of ``func`` should be + {output_note}, in the format 'attribute: value; attribute2: value2; ...' + or, if nothing is to be applied to that element, an empty string or ``None``. + + Examples + -------- + Basic usage to conditionally highlight values in the index. + + >>> df = pd.DataFrame([[1,2], [3,4]], index=["A", "B"]) + >>> def color_b(s): + ... return {ret} + >>> df.style.{this}_index(color_b) # doctest: +SKIP + + .. figure:: ../../_static/style/appmaphead1.png + + Selectively applying to specific levels of MultiIndex columns. + + >>> midx = pd.MultiIndex.from_product([['ix', 'jy'], [0, 1], ['x3', 'z4']]) + >>> df = pd.DataFrame([np.arange(8)], columns=midx) + >>> def highlight_x({var}): + ... return {ret2} + >>> df.style.{this}_index(highlight_x, axis="columns", level=[0, 2]) + ... # doctest: +SKIP + + .. figure:: ../../_static/style/appmaphead2.png + """ + self._todo.append( + ( + lambda instance: getattr(instance, "_apply_index"), + (func, axis, level, "apply"), + kwargs, + ) + ) + return self + + @doc( + apply_index, + this="map", + wise="elementwise", + alt="apply", + altwise="level-wise", + func="take a scalar and return a string", + input_note="an index value, if an Index, or a level value of a MultiIndex", + output_note="CSS styles as a string", + var="v", + ret='"background-color: yellow;" if v == "B" else None', + ret2='"background-color: yellow;" if "x" in v else None', + ) + def map_index( + self, + func: Callable, + axis: AxisInt | str = 0, + level: Level | list[Level] | None = None, + **kwargs, + ) -> Styler: + self._todo.append( + ( + lambda instance: getattr(instance, "_apply_index"), + (func, axis, level, "map"), + kwargs, + ) + ) + return self + + def applymap_index( + self, + func: Callable, + axis: AxisInt | str = 0, + level: Level | list[Level] | None = None, + **kwargs, + ) -> Styler: + """ + Apply a CSS-styling function to the index or column headers, elementwise. + + .. deprecated:: 2.1.0 + + Styler.applymap_index has been deprecated. Use Styler.map_index instead. + + Parameters + ---------- + func : function + ``func`` should take a scalar and return a string. + axis : {{0, 1, "index", "columns"}} + The headers over which to apply the function. + level : int, str, list, optional + If index is MultiIndex the level(s) over which to apply the function. + **kwargs : dict + Pass along to ``func``. + + Returns + ------- + Styler + """ + warnings.warn( + "Styler.applymap_index has been deprecated. Use Styler.map_index instead.", + FutureWarning, + stacklevel=find_stack_level(), + ) + return self.map_index(func, axis, level, **kwargs) + + def _map(self, func: Callable, subset: Subset | None = None, **kwargs) -> Styler: + func = partial(func, **kwargs) # map doesn't take kwargs? + if subset is None: + subset = IndexSlice[:] + subset = non_reducing_slice(subset) + result = self.data.loc[subset].map(func) + self._update_ctx(result) + return self + + @Substitution(subset=subset_args) + def map(self, func: Callable, subset: Subset | None = None, **kwargs) -> Styler: + """ + Apply a CSS-styling function elementwise. + + Updates the HTML representation with the result. + + Parameters + ---------- + func : function + ``func`` should take a scalar and return a string. + %(subset)s + **kwargs : dict + Pass along to ``func``. + + Returns + ------- + Styler + + See Also + -------- + Styler.map_index: Apply a CSS-styling function to headers elementwise. + Styler.apply_index: Apply a CSS-styling function to headers level-wise. + Styler.apply: Apply a CSS-styling function column-wise, row-wise, or table-wise. + + Notes + ----- + The elements of the output of ``func`` should be CSS styles as strings, in the + format 'attribute: value; attribute2: value2; ...' or, + if nothing is to be applied to that element, an empty string or ``None``. + + Examples + -------- + >>> def color_negative(v, color): + ... return f"color: {color};" if v < 0 else None + >>> df = pd.DataFrame(np.random.randn(5, 2), columns=["A", "B"]) + >>> df.style.map(color_negative, color='red') # doctest: +SKIP + + Using ``subset`` to restrict application to a single column or multiple columns + + >>> df.style.map(color_negative, color='red', subset="A") + ... # doctest: +SKIP + >>> df.style.map(color_negative, color='red', subset=["A", "B"]) + ... # doctest: +SKIP + + Using a 2d input to ``subset`` to select rows in addition to columns + + >>> df.style.map(color_negative, color='red', + ... subset=([0,1,2], slice(None))) # doctest: +SKIP + >>> df.style.map(color_negative, color='red', subset=(slice(0,5,2), "A")) + ... # doctest: +SKIP + + See `Table Visualization <../../user_guide/style.ipynb>`_ user guide for + more details. + """ + self._todo.append( + (lambda instance: getattr(instance, "_map"), (func, subset), kwargs) + ) + return self + + @Substitution(subset=subset_args) + def applymap( + self, func: Callable, subset: Subset | None = None, **kwargs + ) -> Styler: + """ + Apply a CSS-styling function elementwise. + + .. deprecated:: 2.1.0 + + Styler.applymap has been deprecated. Use Styler.map instead. + + Parameters + ---------- + func : function + ``func`` should take a scalar and return a string. + %(subset)s + **kwargs : dict + Pass along to ``func``. + + Returns + ------- + Styler + """ + warnings.warn( + "Styler.applymap has been deprecated. Use Styler.map instead.", + FutureWarning, + stacklevel=find_stack_level(), + ) + return self.map(func, subset, **kwargs) + + def set_table_attributes(self, attributes: str) -> Styler: + """ + Set the table attributes added to the ```` HTML element. + + These are items in addition to automatic (by default) ``id`` attribute. + + Parameters + ---------- + attributes : str + + Returns + ------- + Styler + + See Also + -------- + Styler.set_table_styles: Set the table styles included within the `` block + + Parameters + ---------- + sparsify_index : bool + Whether index_headers section will add rowspan attributes (>1) to elements. + + Returns + ------- + body : list + The associated HTML elements needed for template rendering. + """ + rlabels = self.data.index.tolist() + if not isinstance(self.data.index, MultiIndex): + rlabels = [[x] for x in rlabels] + + body: list = [] + visible_row_count: int = 0 + for r, row_tup in [ + z for z in enumerate(self.data.itertuples()) if z[0] not in self.hidden_rows + ]: + visible_row_count += 1 + if self._check_trim( + visible_row_count, + max_rows, + body, + "row", + ): + break + + body_row = self._generate_body_row( + (r, row_tup, rlabels), max_cols, idx_lengths + ) + body.append(body_row) + return body + + def _check_trim( + self, + count: int, + max: int, + obj: list, + element: str, + css: str | None = None, + value: str = "...", + ) -> bool: + """ + Indicates whether to break render loops and append a trimming indicator + + Parameters + ---------- + count : int + The loop count of previous visible items. + max : int + The allowable rendered items in the loop. + obj : list + The current render collection of the rendered items. + element : str + The type of element to append in the case a trimming indicator is needed. + css : str, optional + The css to add to the trimming indicator element. + value : str, optional + The value of the elements display if necessary. + + Returns + ------- + result : bool + Whether a trimming element was required and appended. + """ + if count > max: + if element == "row": + obj.append(self._generate_trimmed_row(max)) + else: + obj.append(_element(element, css, value, True, attributes="")) + return True + return False + + def _generate_trimmed_row(self, max_cols: int) -> list: + """ + When a render has too many rows we generate a trimming row containing "..." + + Parameters + ---------- + max_cols : int + Number of permissible columns + + Returns + ------- + list of elements + """ + index_headers = [ + _element( + "th", + ( + f"{self.css['row_heading']} {self.css['level']}{c} " + f"{self.css['row_trim']}" + ), + "...", + not self.hide_index_[c], + attributes="", + ) + for c in range(self.data.index.nlevels) + ] + + data: list = [] + visible_col_count: int = 0 + for c, _ in enumerate(self.columns): + data_element_visible = c not in self.hidden_columns + if data_element_visible: + visible_col_count += 1 + if self._check_trim( + visible_col_count, + max_cols, + data, + "td", + f"{self.css['data']} {self.css['row_trim']} {self.css['col_trim']}", + ): + break + + data.append( + _element( + "td", + f"{self.css['data']} {self.css['col']}{c} {self.css['row_trim']}", + "...", + data_element_visible, + attributes="", + ) + ) + + return index_headers + data + + def _generate_body_row( + self, + iter: tuple, + max_cols: int, + idx_lengths: dict, + ): + """ + Generate a regular row for the body section of appropriate format. + + +--------------------------------------------+---------------------------+ + | index_header_0 ... index_header_n | data_by_column ... | + +--------------------------------------------+---------------------------+ + + Parameters + ---------- + iter : tuple + Iterable from outer scope: row number, row data tuple, row index labels. + max_cols : int + Number of permissible columns. + idx_lengths : dict + A map of the sparsification structure of the index + + Returns + ------- + list of elements + """ + r, row_tup, rlabels = iter + + index_headers = [] + for c, value in enumerate(rlabels[r]): + header_element_visible = ( + _is_visible(r, c, idx_lengths) and not self.hide_index_[c] + ) + header_element = _element( + "th", + ( + f"{self.css['row_heading']} {self.css['level']}{c} " + f"{self.css['row']}{r}" + ), + value, + header_element_visible, + display_value=self._display_funcs_index[(r, c)](value), + attributes=( + f'rowspan="{idx_lengths.get((c, r), 0)}"' + if idx_lengths.get((c, r), 0) > 1 + else "" + ), + ) + + if self.cell_ids: + header_element[ + "id" + ] = f"{self.css['level']}{c}_{self.css['row']}{r}" # id is given + if ( + header_element_visible + and (r, c) in self.ctx_index + and self.ctx_index[r, c] + ): + # always add id if a style is specified + header_element["id"] = f"{self.css['level']}{c}_{self.css['row']}{r}" + self.cellstyle_map_index[tuple(self.ctx_index[r, c])].append( + f"{self.css['level']}{c}_{self.css['row']}{r}" + ) + + index_headers.append(header_element) + + data: list = [] + visible_col_count: int = 0 + for c, value in enumerate(row_tup[1:]): + data_element_visible = ( + c not in self.hidden_columns and r not in self.hidden_rows + ) + if data_element_visible: + visible_col_count += 1 + if self._check_trim( + visible_col_count, + max_cols, + data, + "td", + f"{self.css['data']} {self.css['row']}{r} {self.css['col_trim']}", + ): + break + + # add custom classes from cell context + cls = "" + if (r, c) in self.cell_context: + cls = " " + self.cell_context[r, c] + + data_element = _element( + "td", + ( + f"{self.css['data']} {self.css['row']}{r} " + f"{self.css['col']}{c}{cls}" + ), + value, + data_element_visible, + attributes="", + display_value=self._display_funcs[(r, c)](value), + ) + + if self.cell_ids: + data_element["id"] = f"{self.css['row']}{r}_{self.css['col']}{c}" + if data_element_visible and (r, c) in self.ctx and self.ctx[r, c]: + # always add id if needed due to specified style + data_element["id"] = f"{self.css['row']}{r}_{self.css['col']}{c}" + self.cellstyle_map[tuple(self.ctx[r, c])].append( + f"{self.css['row']}{r}_{self.css['col']}{c}" + ) + + data.append(data_element) + + return index_headers + data + + def _translate_latex(self, d: dict, clines: str | None) -> None: + r""" + Post-process the default render dict for the LaTeX template format. + + Processing items included are: + - Remove hidden columns from the non-headers part of the body. + - Place cellstyles directly in td cells rather than use cellstyle_map. + - Remove hidden indexes or reinsert missing th elements if part of multiindex + or multirow sparsification (so that \multirow and \multicol work correctly). + """ + index_levels = self.index.nlevels + visible_index_level_n = index_levels - sum(self.hide_index_) + d["head"] = [ + [ + {**col, "cellstyle": self.ctx_columns[r, c - visible_index_level_n]} + for c, col in enumerate(row) + if col["is_visible"] + ] + for r, row in enumerate(d["head"]) + ] + + def _concatenated_visible_rows(obj, n, row_indices): + """ + Extract all visible row indices recursively from concatenated stylers. + """ + row_indices.extend( + [r + n for r in range(len(obj.index)) if r not in obj.hidden_rows] + ) + n += len(obj.index) + for concatenated in obj.concatenated: + n = _concatenated_visible_rows(concatenated, n, row_indices) + return n + + def concatenated_visible_rows(obj): + row_indices: list[int] = [] + _concatenated_visible_rows(obj, 0, row_indices) + # TODO try to consolidate the concat visible rows + # methods to a single function / recursion for simplicity + return row_indices + + body = [] + for r, row in zip(concatenated_visible_rows(self), d["body"]): + # note: cannot enumerate d["body"] because rows were dropped if hidden + # during _translate_body so must zip to acquire the true r-index associated + # with the ctx obj which contains the cell styles. + if all(self.hide_index_): + row_body_headers = [] + else: + row_body_headers = [ + { + **col, + "display_value": col["display_value"] + if col["is_visible"] + else "", + "cellstyle": self.ctx_index[r, c], + } + for c, col in enumerate(row[:index_levels]) + if (col["type"] == "th" and not self.hide_index_[c]) + ] + + row_body_cells = [ + {**col, "cellstyle": self.ctx[r, c]} + for c, col in enumerate(row[index_levels:]) + if (col["is_visible"] and col["type"] == "td") + ] + + body.append(row_body_headers + row_body_cells) + d["body"] = body + + # clines are determined from info on index_lengths and hidden_rows and input + # to a dict defining which row clines should be added in the template. + if clines not in [ + None, + "all;data", + "all;index", + "skip-last;data", + "skip-last;index", + ]: + raise ValueError( + f"`clines` value of {clines} is invalid. Should either be None or one " + f"of 'all;data', 'all;index', 'skip-last;data', 'skip-last;index'." + ) + if clines is not None: + data_len = len(row_body_cells) if "data" in clines and d["body"] else 0 + + d["clines"] = defaultdict(list) + visible_row_indexes: list[int] = [ + r for r in range(len(self.data.index)) if r not in self.hidden_rows + ] + visible_index_levels: list[int] = [ + i for i in range(index_levels) if not self.hide_index_[i] + ] + for rn, r in enumerate(visible_row_indexes): + for lvln, lvl in enumerate(visible_index_levels): + if lvl == index_levels - 1 and "skip-last" in clines: + continue + idx_len = d["index_lengths"].get((lvl, r), None) + if idx_len is not None: # i.e. not a sparsified entry + d["clines"][rn + idx_len].append( + f"\\cline{{{lvln+1}-{len(visible_index_levels)+data_len}}}" + ) + + def format( + self, + formatter: ExtFormatter | None = None, + subset: Subset | None = None, + na_rep: str | None = None, + precision: int | None = None, + decimal: str = ".", + thousands: str | None = None, + escape: str | None = None, + hyperlinks: str | None = None, + ) -> StylerRenderer: + r""" + Format the text display value of cells. + + Parameters + ---------- + formatter : str, callable, dict or None + Object to define how values are displayed. See notes. + subset : label, array-like, IndexSlice, optional + A valid 2d input to `DataFrame.loc[]`, or, in the case of a 1d input + or single key, to `DataFrame.loc[:, ]` where the columns are + prioritised, to limit ``data`` to *before* applying the function. + na_rep : str, optional + Representation for missing values. + If ``na_rep`` is None, no special formatting is applied. + precision : int, optional + Floating point precision to use for display purposes, if not determined by + the specified ``formatter``. + + .. versionadded:: 1.3.0 + + decimal : str, default "." + Character used as decimal separator for floats, complex and integers. + + .. versionadded:: 1.3.0 + + thousands : str, optional, default None + Character used as thousands separator for floats, complex and integers. + + .. versionadded:: 1.3.0 + + escape : str, optional + Use 'html' to replace the characters ``&``, ``<``, ``>``, ``'``, and ``"`` + in cell display string with HTML-safe sequences. + Use 'latex' to replace the characters ``&``, ``%``, ``$``, ``#``, ``_``, + ``{``, ``}``, ``~``, ``^``, and ``\`` in the cell display string with + LaTeX-safe sequences. + Use 'latex-math' to replace the characters the same way as in 'latex' mode, + except for math substrings, which either are surrounded + by two characters ``$`` or start with the character ``\(`` and + end with ``\)``. Escaping is done before ``formatter``. + + .. versionadded:: 1.3.0 + + hyperlinks : {"html", "latex"}, optional + Convert string patterns containing https://, http://, ftp:// or www. to + HTML tags as clickable URL hyperlinks if "html", or LaTeX \href + commands if "latex". + + .. versionadded:: 1.4.0 + + Returns + ------- + Styler + + See Also + -------- + Styler.format_index: Format the text display value of index labels. + + Notes + ----- + This method assigns a formatting function, ``formatter``, to each cell in the + DataFrame. If ``formatter`` is ``None``, then the default formatter is used. + If a callable then that function should take a data value as input and return + a displayable representation, such as a string. If ``formatter`` is + given as a string this is assumed to be a valid Python format specification + and is wrapped to a callable as ``string.format(x)``. If a ``dict`` is given, + keys should correspond to column names, and values should be string or + callable, as above. + + The default formatter currently expresses floats and complex numbers with the + pandas display precision unless using the ``precision`` argument here. The + default formatter does not adjust the representation of missing values unless + the ``na_rep`` argument is used. + + The ``subset`` argument defines which region to apply the formatting function + to. If the ``formatter`` argument is given in dict form but does not include + all columns within the subset then these columns will have the default formatter + applied. Any columns in the formatter dict excluded from the subset will + be ignored. + + When using a ``formatter`` string the dtypes must be compatible, otherwise a + `ValueError` will be raised. + + When instantiating a Styler, default formatting can be applied be setting the + ``pandas.options``: + + - ``styler.format.formatter``: default None. + - ``styler.format.na_rep``: default None. + - ``styler.format.precision``: default 6. + - ``styler.format.decimal``: default ".". + - ``styler.format.thousands``: default None. + - ``styler.format.escape``: default None. + + .. warning:: + `Styler.format` is ignored when using the output format `Styler.to_excel`, + since Excel and Python have inherrently different formatting structures. + However, it is possible to use the `number-format` pseudo CSS attribute + to force Excel permissible formatting. See examples. + + Examples + -------- + Using ``na_rep`` and ``precision`` with the default ``formatter`` + + >>> df = pd.DataFrame([[np.nan, 1.0, 'A'], [2.0, np.nan, 3.0]]) + >>> df.style.format(na_rep='MISS', precision=3) # doctest: +SKIP + 0 1 2 + 0 MISS 1.000 A + 1 2.000 MISS 3.000 + + Using a ``formatter`` specification on consistent column dtypes + + >>> df.style.format('{:.2f}', na_rep='MISS', subset=[0,1]) # doctest: +SKIP + 0 1 2 + 0 MISS 1.00 A + 1 2.00 MISS 3.000000 + + Using the default ``formatter`` for unspecified columns + + >>> df.style.format({0: '{:.2f}', 1: '£ {:.1f}'}, na_rep='MISS', precision=1) + ... # doctest: +SKIP + 0 1 2 + 0 MISS £ 1.0 A + 1 2.00 MISS 3.0 + + Multiple ``na_rep`` or ``precision`` specifications under the default + ``formatter``. + + >>> (df.style.format(na_rep='MISS', precision=1, subset=[0]) + ... .format(na_rep='PASS', precision=2, subset=[1, 2])) # doctest: +SKIP + 0 1 2 + 0 MISS 1.00 A + 1 2.0 PASS 3.00 + + Using a callable ``formatter`` function. + + >>> func = lambda s: 'STRING' if isinstance(s, str) else 'FLOAT' + >>> df.style.format({0: '{:.1f}', 2: func}, precision=4, na_rep='MISS') + ... # doctest: +SKIP + 0 1 2 + 0 MISS 1.0000 STRING + 1 2.0 MISS FLOAT + + Using a ``formatter`` with HTML ``escape`` and ``na_rep``. + + >>> df = pd.DataFrame([['
', '"A&B"', None]]) + >>> s = df.style.format( + ... '
{0}', escape="html", na_rep="NA" + ... ) + >>> s.to_html() # doctest: +SKIP + ... +
+ + + ... + + Using a ``formatter`` with ``escape`` in 'latex' mode. + + >>> df = pd.DataFrame([["123"], ["~ ^"], ["$%#"]]) + >>> df.style.format("\\textbf{{{}}}", escape="latex").to_latex() + ... # doctest: +SKIP + \begin{tabular}{ll} + & 0 \\ + 0 & \textbf{123} \\ + 1 & \textbf{\textasciitilde \space \textasciicircum } \\ + 2 & \textbf{\$\%\#} \\ + \end{tabular} + + Applying ``escape`` in 'latex-math' mode. In the example below + we enter math mode using the character ``$``. + + >>> df = pd.DataFrame([[r"$\sum_{i=1}^{10} a_i$ a~b $\alpha \ + ... = \frac{\beta}{\zeta^2}$"], ["%#^ $ \$x^2 $"]]) + >>> df.style.format(escape="latex-math").to_latex() + ... # doctest: +SKIP + \begin{tabular}{ll} + & 0 \\ + 0 & $\sum_{i=1}^{10} a_i$ a\textasciitilde b $\alpha = \frac{\beta}{\zeta^2}$ \\ + 1 & \%\#\textasciicircum \space $ \$x^2 $ \\ + \end{tabular} + + We can use the character ``\(`` to enter math mode and the character ``\)`` + to close math mode. + + >>> df = pd.DataFrame([[r"\(\sum_{i=1}^{10} a_i\) a~b \(\alpha \ + ... = \frac{\beta}{\zeta^2}\)"], ["%#^ \( \$x^2 \)"]]) + >>> df.style.format(escape="latex-math").to_latex() + ... # doctest: +SKIP + \begin{tabular}{ll} + & 0 \\ + 0 & \(\sum_{i=1}^{10} a_i\) a\textasciitilde b \(\alpha + = \frac{\beta}{\zeta^2}\) \\ + 1 & \%\#\textasciicircum \space \( \$x^2 \) \\ + \end{tabular} + + If we have in one DataFrame cell a combination of both shorthands + for math formulas, the shorthand with the sign ``$`` will be applied. + + >>> df = pd.DataFrame([[r"\( x^2 \) $x^2$"], \ + ... [r"$\frac{\beta}{\zeta}$ \(\frac{\beta}{\zeta}\)"]]) + >>> df.style.format(escape="latex-math").to_latex() + ... # doctest: +SKIP + \begin{tabular}{ll} + & 0 \\ + 0 & \textbackslash ( x\textasciicircum 2 \textbackslash ) $x^2$ \\ + 1 & $\frac{\beta}{\zeta}$ \textbackslash (\textbackslash + frac\{\textbackslash beta\}\{\textbackslash zeta\}\textbackslash ) \\ + \end{tabular} + + Pandas defines a `number-format` pseudo CSS attribute instead of the `.format` + method to create `to_excel` permissible formatting. Note that semi-colons are + CSS protected characters but used as separators in Excel's format string. + Replace semi-colons with the section separator character (ASCII-245) when + defining the formatting here. + + >>> df = pd.DataFrame({"A": [1, 0, -1]}) + >>> pseudo_css = "number-format: 0§[Red](0)§-§@;" + >>> filename = "formatted_file.xlsx" + >>> df.style.map(lambda v: pseudo_css).to_excel(filename) # doctest: +SKIP + + .. figure:: ../../_static/style/format_excel_css.png + """ + if all( + ( + formatter is None, + subset is None, + precision is None, + decimal == ".", + thousands is None, + na_rep is None, + escape is None, + hyperlinks is None, + ) + ): + self._display_funcs.clear() + return self # clear the formatter / revert to default and avoid looping + + subset = slice(None) if subset is None else subset + subset = non_reducing_slice(subset) + data = self.data.loc[subset] + + if not isinstance(formatter, dict): + formatter = {col: formatter for col in data.columns} + + cis = self.columns.get_indexer_for(data.columns) + ris = self.index.get_indexer_for(data.index) + for ci in cis: + format_func = _maybe_wrap_formatter( + formatter.get(self.columns[ci]), + na_rep=na_rep, + precision=precision, + decimal=decimal, + thousands=thousands, + escape=escape, + hyperlinks=hyperlinks, + ) + for ri in ris: + self._display_funcs[(ri, ci)] = format_func + + return self + + def format_index( + self, + formatter: ExtFormatter | None = None, + axis: Axis = 0, + level: Level | list[Level] | None = None, + na_rep: str | None = None, + precision: int | None = None, + decimal: str = ".", + thousands: str | None = None, + escape: str | None = None, + hyperlinks: str | None = None, + ) -> StylerRenderer: + r""" + Format the text display value of index labels or column headers. + + .. versionadded:: 1.4.0 + + Parameters + ---------- + formatter : str, callable, dict or None + Object to define how values are displayed. See notes. + axis : {0, "index", 1, "columns"} + Whether to apply the formatter to the index or column headers. + level : int, str, list + The level(s) over which to apply the generic formatter. + na_rep : str, optional + Representation for missing values. + If ``na_rep`` is None, no special formatting is applied. + precision : int, optional + Floating point precision to use for display purposes, if not determined by + the specified ``formatter``. + decimal : str, default "." + Character used as decimal separator for floats, complex and integers. + thousands : str, optional, default None + Character used as thousands separator for floats, complex and integers. + escape : str, optional + Use 'html' to replace the characters ``&``, ``<``, ``>``, ``'``, and ``"`` + in cell display string with HTML-safe sequences. + Use 'latex' to replace the characters ``&``, ``%``, ``$``, ``#``, ``_``, + ``{``, ``}``, ``~``, ``^``, and ``\`` in the cell display string with + LaTeX-safe sequences. + Escaping is done before ``formatter``. + hyperlinks : {"html", "latex"}, optional + Convert string patterns containing https://, http://, ftp:// or www. to + HTML tags as clickable URL hyperlinks if "html", or LaTeX \href + commands if "latex". + + Returns + ------- + Styler + + See Also + -------- + Styler.format: Format the text display value of data cells. + + Notes + ----- + This method assigns a formatting function, ``formatter``, to each level label + in the DataFrame's index or column headers. If ``formatter`` is ``None``, + then the default formatter is used. + If a callable then that function should take a label value as input and return + a displayable representation, such as a string. If ``formatter`` is + given as a string this is assumed to be a valid Python format specification + and is wrapped to a callable as ``string.format(x)``. If a ``dict`` is given, + keys should correspond to MultiIndex level numbers or names, and values should + be string or callable, as above. + + The default formatter currently expresses floats and complex numbers with the + pandas display precision unless using the ``precision`` argument here. The + default formatter does not adjust the representation of missing values unless + the ``na_rep`` argument is used. + + The ``level`` argument defines which levels of a MultiIndex to apply the + method to. If the ``formatter`` argument is given in dict form but does + not include all levels within the level argument then these unspecified levels + will have the default formatter applied. Any levels in the formatter dict + specifically excluded from the level argument will be ignored. + + When using a ``formatter`` string the dtypes must be compatible, otherwise a + `ValueError` will be raised. + + .. warning:: + `Styler.format_index` is ignored when using the output format + `Styler.to_excel`, since Excel and Python have inherrently different + formatting structures. + However, it is possible to use the `number-format` pseudo CSS attribute + to force Excel permissible formatting. See documentation for `Styler.format`. + + Examples + -------- + Using ``na_rep`` and ``precision`` with the default ``formatter`` + + >>> df = pd.DataFrame([[1, 2, 3]], columns=[2.0, np.nan, 4.0]) + >>> df.style.format_index(axis=1, na_rep='MISS', precision=3) # doctest: +SKIP + 2.000 MISS 4.000 + 0 1 2 3 + + Using a ``formatter`` specification on consistent dtypes in a level + + >>> df.style.format_index('{:.2f}', axis=1, na_rep='MISS') # doctest: +SKIP + 2.00 MISS 4.00 + 0 1 2 3 + + Using the default ``formatter`` for unspecified levels + + >>> df = pd.DataFrame([[1, 2, 3]], + ... columns=pd.MultiIndex.from_arrays([["a", "a", "b"],[2, np.nan, 4]])) + >>> df.style.format_index({0: lambda v: v.upper()}, axis=1, precision=1) + ... # doctest: +SKIP + A B + 2.0 nan 4.0 + 0 1 2 3 + + Using a callable ``formatter`` function. + + >>> func = lambda s: 'STRING' if isinstance(s, str) else 'FLOAT' + >>> df.style.format_index(func, axis=1, na_rep='MISS') + ... # doctest: +SKIP + STRING STRING + FLOAT MISS FLOAT + 0 1 2 3 + + Using a ``formatter`` with HTML ``escape`` and ``na_rep``. + + >>> df = pd.DataFrame([[1, 2, 3]], columns=['"A"', 'A&B', None]) + >>> s = df.style.format_index('$ {0}', axis=1, escape="html", na_rep="NA") + ... # doctest: +SKIP + + + or element. + """ + if "display_value" not in kwargs: + kwargs["display_value"] = value + return { + "type": html_element, + "value": value, + "class": html_class, + "is_visible": is_visible, + **kwargs, + } + + +def _get_trimming_maximums( + rn, + cn, + max_elements, + max_rows=None, + max_cols=None, + scaling_factor: float = 0.8, +) -> tuple[int, int]: + """ + Recursively reduce the number of rows and columns to satisfy max elements. + + Parameters + ---------- + rn, cn : int + The number of input rows / columns + max_elements : int + The number of allowable elements + max_rows, max_cols : int, optional + Directly specify an initial maximum rows or columns before compression. + scaling_factor : float + Factor at which to reduce the number of rows / columns to fit. + + Returns + ------- + rn, cn : tuple + New rn and cn values that satisfy the max_elements constraint + """ + + def scale_down(rn, cn): + if cn >= rn: + return rn, int(cn * scaling_factor) + else: + return int(rn * scaling_factor), cn + + if max_rows: + rn = max_rows if rn > max_rows else rn + if max_cols: + cn = max_cols if cn > max_cols else cn + + while rn * cn > max_elements: + rn, cn = scale_down(rn, cn) + + return rn, cn + + +def _get_level_lengths( + index: Index, + sparsify: bool, + max_index: int, + hidden_elements: Sequence[int] | None = None, +): + """ + Given an index, find the level length for each element. + + Parameters + ---------- + index : Index + Index or columns to determine lengths of each element + sparsify : bool + Whether to hide or show each distinct element in a MultiIndex + max_index : int + The maximum number of elements to analyse along the index due to trimming + hidden_elements : sequence of int + Index positions of elements hidden from display in the index affecting + length + + Returns + ------- + Dict : + Result is a dictionary of (level, initial_position): span + """ + if isinstance(index, MultiIndex): + levels = index._format_multi(sparsify=lib.no_default, include_names=False) + else: + levels = index._format_flat(include_name=False) + + if hidden_elements is None: + hidden_elements = [] + + lengths = {} + if not isinstance(index, MultiIndex): + for i, value in enumerate(levels): + if i not in hidden_elements: + lengths[(0, i)] = 1 + return lengths + + for i, lvl in enumerate(levels): + visible_row_count = 0 # used to break loop due to display trimming + for j, row in enumerate(lvl): + if visible_row_count > max_index: + break + if not sparsify: + # then lengths will always equal 1 since no aggregation. + if j not in hidden_elements: + lengths[(i, j)] = 1 + visible_row_count += 1 + elif (row is not lib.no_default) and (j not in hidden_elements): + # this element has not been sparsified so must be the start of section + last_label = j + lengths[(i, last_label)] = 1 + visible_row_count += 1 + elif row is not lib.no_default: + # even if the above is hidden, keep track of it in case length > 1 and + # later elements are visible + last_label = j + lengths[(i, last_label)] = 0 + elif j not in hidden_elements: + # then element must be part of sparsified section and is visible + visible_row_count += 1 + if visible_row_count > max_index: + break # do not add a length since the render trim limit reached + if lengths[(i, last_label)] == 0: + # if previous iteration was first-of-section but hidden then offset + last_label = j + lengths[(i, last_label)] = 1 + else: + # else add to previous iteration + lengths[(i, last_label)] += 1 + + non_zero_lengths = { + element: length for element, length in lengths.items() if length >= 1 + } + + return non_zero_lengths + + +def _is_visible(idx_row, idx_col, lengths) -> bool: + """ + Index -> {(idx_row, idx_col): bool}). + """ + return (idx_col, idx_row) in lengths + + +def format_table_styles(styles: CSSStyles) -> CSSStyles: + """ + looks for multiple CSS selectors and separates them: + [{'selector': 'td, th', 'props': 'a:v;'}] + ---> [{'selector': 'td', 'props': 'a:v;'}, + {'selector': 'th', 'props': 'a:v;'}] + """ + return [ + {"selector": selector, "props": css_dict["props"]} + for css_dict in styles + for selector in css_dict["selector"].split(",") + ] + + +def _default_formatter(x: Any, precision: int, thousands: bool = False) -> Any: + """ + Format the display of a value + + Parameters + ---------- + x : Any + Input variable to be formatted + precision : Int + Floating point precision used if ``x`` is float or complex. + thousands : bool, default False + Whether to group digits with thousands separated with ",". + + Returns + ------- + value : Any + Matches input type, or string if input is float or complex or int with sep. + """ + if is_float(x) or is_complex(x): + return f"{x:,.{precision}f}" if thousands else f"{x:.{precision}f}" + elif is_integer(x): + return f"{x:,}" if thousands else str(x) + return x + + +def _wrap_decimal_thousands( + formatter: Callable, decimal: str, thousands: str | None +) -> Callable: + """ + Takes a string formatting function and wraps logic to deal with thousands and + decimal parameters, in the case that they are non-standard and that the input + is a (float, complex, int). + """ + + def wrapper(x): + if is_float(x) or is_integer(x) or is_complex(x): + if decimal != "." and thousands is not None and thousands != ",": + return ( + formatter(x) + .replace(",", "§_§-") # rare string to avoid "," <-> "." clash. + .replace(".", decimal) + .replace("§_§-", thousands) + ) + elif decimal != "." and (thousands is None or thousands == ","): + return formatter(x).replace(".", decimal) + elif decimal == "." and thousands is not None and thousands != ",": + return formatter(x).replace(",", thousands) + return formatter(x) + + return wrapper + + +def _str_escape(x, escape): + """if escaping: only use on str, else return input""" + if isinstance(x, str): + if escape == "html": + return escape_html(x) + elif escape == "latex": + return _escape_latex(x) + elif escape == "latex-math": + return _escape_latex_math(x) + else: + raise ValueError( + f"`escape` only permitted in {{'html', 'latex', 'latex-math'}}, \ +got {escape}" + ) + return x + + +def _render_href(x, format): + """uses regex to detect a common URL pattern and converts to href tag in format.""" + if isinstance(x, str): + if format == "html": + href = '{0}' + elif format == "latex": + href = r"\href{{{0}}}{{{0}}}" + else: + raise ValueError("``hyperlinks`` format can only be 'html' or 'latex'") + pat = r"((http|ftp)s?:\/\/|www.)[\w/\-?=%.:@]+\.[\w/\-&?=%.,':;~!@#$*()\[\]]+" + return re.sub(pat, lambda m: href.format(m.group(0)), x) + return x + + +def _maybe_wrap_formatter( + formatter: BaseFormatter | None = None, + na_rep: str | None = None, + precision: int | None = None, + decimal: str = ".", + thousands: str | None = None, + escape: str | None = None, + hyperlinks: str | None = None, +) -> Callable: + """ + Allows formatters to be expressed as str, callable or None, where None returns + a default formatting function. wraps with na_rep, and precision where they are + available. + """ + # Get initial func from input string, input callable, or from default factory + if isinstance(formatter, str): + func_0 = lambda x: formatter.format(x) + elif callable(formatter): + func_0 = formatter + elif formatter is None: + precision = ( + get_option("styler.format.precision") if precision is None else precision + ) + func_0 = partial( + _default_formatter, precision=precision, thousands=(thousands is not None) + ) + else: + raise TypeError(f"'formatter' expected str or callable, got {type(formatter)}") + + # Replace chars if escaping + if escape is not None: + func_1 = lambda x: func_0(_str_escape(x, escape=escape)) + else: + func_1 = func_0 + + # Replace decimals and thousands if non-standard inputs detected + if decimal != "." or (thousands is not None and thousands != ","): + func_2 = _wrap_decimal_thousands(func_1, decimal=decimal, thousands=thousands) + else: + func_2 = func_1 + + # Render links + if hyperlinks is not None: + func_3 = lambda x: func_2(_render_href(x, format=hyperlinks)) + else: + func_3 = func_2 + + # Replace missing values if na_rep + if na_rep is None: + return func_3 + else: + return lambda x: na_rep if (isna(x) is True) else func_3(x) + + +def non_reducing_slice(slice_: Subset): + """ + Ensure that a slice doesn't reduce to a Series or Scalar. + + Any user-passed `subset` should have this called on it + to make sure we're always working with DataFrames. + """ + # default to column slice, like DataFrame + # ['A', 'B'] -> IndexSlices[:, ['A', 'B']] + kinds = (ABCSeries, np.ndarray, Index, list, str) + if isinstance(slice_, kinds): + slice_ = IndexSlice[:, slice_] + + def pred(part) -> bool: + """ + Returns + ------- + bool + True if slice does *not* reduce, + False if `part` is a tuple. + """ + # true when slice does *not* reduce, False when part is a tuple, + # i.e. MultiIndex slice + if isinstance(part, tuple): + # GH#39421 check for sub-slice: + return any((isinstance(s, slice) or is_list_like(s)) for s in part) + else: + return isinstance(part, slice) or is_list_like(part) + + if not is_list_like(slice_): + if not isinstance(slice_, slice): + # a 1-d slice, like df.loc[1] + slice_ = [[slice_]] + else: + # slice(a, b, c) + slice_ = [slice_] # to tuplize later + else: + # error: Item "slice" of "Union[slice, Sequence[Any]]" has no attribute + # "__iter__" (not iterable) -> is specifically list_like in conditional + slice_ = [p if pred(p) else [p] for p in slice_] # type: ignore[union-attr] + return tuple(slice_) + + +def maybe_convert_css_to_tuples(style: CSSProperties) -> CSSList: + """ + Convert css-string to sequence of tuples format if needed. + 'color:red; border:1px solid black;' -> [('color', 'red'), + ('border','1px solid red')] + """ + if isinstance(style, str): + s = style.split(";") + try: + return [ + (x.split(":")[0].strip(), x.split(":")[1].strip()) + for x in s + if x.strip() != "" + ] + except IndexError: + raise ValueError( + "Styles supplied as string must follow CSS rule formats, " + f"for example 'attr: val;'. '{style}' was given." + ) + return style + + +def refactor_levels( + level: Level | list[Level] | None, + obj: Index, +) -> list[int]: + """ + Returns a consistent levels arg for use in ``hide_index`` or ``hide_columns``. + + Parameters + ---------- + level : int, str, list + Original ``level`` arg supplied to above methods. + obj: + Either ``self.index`` or ``self.columns`` + + Returns + ------- + list : refactored arg with a list of levels to hide + """ + if level is None: + levels_: list[int] = list(range(obj.nlevels)) + elif isinstance(level, int): + levels_ = [level] + elif isinstance(level, str): + levels_ = [obj._get_level_number(level)] + elif isinstance(level, list): + levels_ = [ + obj._get_level_number(lev) if not isinstance(lev, int) else lev + for lev in level + ] + else: + raise ValueError("`level` must be of type `int`, `str` or list of such") + return levels_ + + +class Tooltips: + """ + An extension to ``Styler`` that allows for and manipulates tooltips on hover + of ``' + assert expected in s.to_html() + + # only the value should be escaped before passing to the formatter + s = Styler(df, uuid_len=0).format("&{0}&", escape=escape) + expected = f'' + assert expected in s.to_html() + + # also test format_index() + styler = Styler(DataFrame(columns=[chars]), uuid_len=0) + styler.format_index("&{0}&", escape=None, axis=1) + assert styler._translate(True, True)["head"][0][1]["display_value"] == f"&{chars}&" + styler.format_index("&{0}&", escape=escape, axis=1) + assert styler._translate(True, True)["head"][0][1]["display_value"] == f"&{exp}&" + + +@pytest.mark.parametrize( + "chars, expected", + [ + ( + r"$ \$&%#_{}~^\ $ &%#_{}~^\ $", + "".join( + [ + r"$ \$&%#_{}~^\ $ ", + r"\&\%\#\_\{\}\textasciitilde \textasciicircum ", + r"\textbackslash \space \$", + ] + ), + ), + ( + r"\( &%#_{}~^\ \) &%#_{}~^\ \(", + "".join( + [ + r"\( &%#_{}~^\ \) ", + r"\&\%\#\_\{\}\textasciitilde \textasciicircum ", + r"\textbackslash \space \textbackslash (", + ] + ), + ), + ( + r"$\&%#_{}^\$", + r"\$\textbackslash \&\%\#\_\{\}\textasciicircum \textbackslash \$", + ), + ( + r"$ \frac{1}{2} $ \( \frac{1}{2} \)", + "".join( + [ + r"$ \frac{1}{2} $", + r" \textbackslash ( \textbackslash frac\{1\}\{2\} \textbackslash )", + ] + ), + ), + ], +) +def test_format_escape_latex_math(chars, expected): + # GH 51903 + # latex-math escape works for each DataFrame cell separately. If we have + # a combination of dollar signs and brackets, the dollar sign would apply. + df = DataFrame([[chars]]) + s = df.style.format("{0}", escape="latex-math") + assert s._translate(True, True)["body"][0][1]["display_value"] == expected + + +def test_format_escape_na_rep(): + # tests the na_rep is not escaped + df = DataFrame([['<>&"', None]]) + s = Styler(df, uuid_len=0).format("X&{0}>X", escape="html", na_rep="&") + ex = '' + expected2 = '' + assert ex in s.to_html() + assert expected2 in s.to_html() + + # also test for format_index() + df = DataFrame(columns=['<>&"', None]) + styler = Styler(df, uuid_len=0) + styler.format_index("X&{0}>X", escape="html", na_rep="&", axis=1) + ctx = styler._translate(True, True) + assert ctx["head"][0][1]["display_value"] == "X&<>&">X" + assert ctx["head"][0][2]["display_value"] == "&" + + +def test_format_escape_floats(styler): + # test given formatter for number format is not impacted by escape + s = styler.format("{:.1f}", escape="html") + for expected in [">0.0<", ">1.0<", ">-1.2<", ">-0.6<"]: + assert expected in s.to_html() + # tests precision of floats is not impacted by escape + s = styler.format(precision=1, escape="html") + for expected in [">0<", ">1<", ">-1.2<", ">-0.6<"]: + assert expected in s.to_html() + + +@pytest.mark.parametrize("formatter", [5, True, [2.0]]) +@pytest.mark.parametrize("func", ["format", "format_index"]) +def test_format_raises(styler, formatter, func): + with pytest.raises(TypeError, match="expected str or callable"): + getattr(styler, func)(formatter) + + +@pytest.mark.parametrize( + "precision, expected", + [ + (1, ["1.0", "2.0", "3.2", "4.6"]), + (2, ["1.00", "2.01", "3.21", "4.57"]), + (3, ["1.000", "2.009", "3.212", "4.566"]), + ], +) +def test_format_with_precision(precision, expected): + # Issue #13257 + df = DataFrame([[1.0, 2.0090, 3.2121, 4.566]], columns=[1.0, 2.0090, 3.2121, 4.566]) + styler = Styler(df) + styler.format(precision=precision) + styler.format_index(precision=precision, axis=1) + + ctx = styler._translate(True, True) + for col, exp in enumerate(expected): + assert ctx["body"][0][col + 1]["display_value"] == exp # format test + assert ctx["head"][0][col + 1]["display_value"] == exp # format_index test + + +@pytest.mark.parametrize("axis", [0, 1]) +@pytest.mark.parametrize( + "level, expected", + [ + (0, ["X", "X", "_", "_"]), # level int + ("zero", ["X", "X", "_", "_"]), # level name + (1, ["_", "_", "X", "X"]), # other level int + ("one", ["_", "_", "X", "X"]), # other level name + ([0, 1], ["X", "X", "X", "X"]), # both levels + ([0, "zero"], ["X", "X", "_", "_"]), # level int and name simultaneous + ([0, "one"], ["X", "X", "X", "X"]), # both levels as int and name + (["one", "zero"], ["X", "X", "X", "X"]), # both level names, reversed + ], +) +def test_format_index_level(axis, level, expected): + midx = MultiIndex.from_arrays([["_", "_"], ["_", "_"]], names=["zero", "one"]) + df = DataFrame([[1, 2], [3, 4]]) + if axis == 0: + df.index = midx + else: + df.columns = midx + + styler = df.style.format_index(lambda v: "X", level=level, axis=axis) + ctx = styler._translate(True, True) + + if axis == 0: # compare index + result = [ctx["body"][s][0]["display_value"] for s in range(2)] + result += [ctx["body"][s][1]["display_value"] for s in range(2)] + else: # compare columns + result = [ctx["head"][0][s + 1]["display_value"] for s in range(2)] + result += [ctx["head"][1][s + 1]["display_value"] for s in range(2)] + + assert expected == result + + +def test_format_subset(): + df = DataFrame([[0.1234, 0.1234], [1.1234, 1.1234]], columns=["a", "b"]) + ctx = df.style.format( + {"a": "{:0.1f}", "b": "{0:.2%}"}, subset=IndexSlice[0, :] + )._translate(True, True) + expected = "0.1" + raw_11 = "1.123400" + assert ctx["body"][0][1]["display_value"] == expected + assert ctx["body"][1][1]["display_value"] == raw_11 + assert ctx["body"][0][2]["display_value"] == "12.34%" + + ctx = df.style.format("{:0.1f}", subset=IndexSlice[0, :])._translate(True, True) + assert ctx["body"][0][1]["display_value"] == expected + assert ctx["body"][1][1]["display_value"] == raw_11 + + ctx = df.style.format("{:0.1f}", subset=IndexSlice["a"])._translate(True, True) + assert ctx["body"][0][1]["display_value"] == expected + assert ctx["body"][0][2]["display_value"] == "0.123400" + + ctx = df.style.format("{:0.1f}", subset=IndexSlice[0, "a"])._translate(True, True) + assert ctx["body"][0][1]["display_value"] == expected + assert ctx["body"][1][1]["display_value"] == raw_11 + + ctx = df.style.format("{:0.1f}", subset=IndexSlice[[0, 1], ["a"]])._translate( + True, True + ) + assert ctx["body"][0][1]["display_value"] == expected + assert ctx["body"][1][1]["display_value"] == "1.1" + assert ctx["body"][0][2]["display_value"] == "0.123400" + assert ctx["body"][1][2]["display_value"] == raw_11 + + +@pytest.mark.parametrize("formatter", [None, "{:,.1f}"]) +@pytest.mark.parametrize("decimal", [".", "*"]) +@pytest.mark.parametrize("precision", [None, 2]) +@pytest.mark.parametrize("func, col", [("format", 1), ("format_index", 0)]) +def test_format_thousands(formatter, decimal, precision, func, col): + styler = DataFrame([[1000000.123456789]], index=[1000000.123456789]).style + result = getattr(styler, func)( # testing float + thousands="_", formatter=formatter, decimal=decimal, precision=precision + )._translate(True, True) + assert "1_000_000" in result["body"][0][col]["display_value"] + + styler = DataFrame([[1000000]], index=[1000000]).style + result = getattr(styler, func)( # testing int + thousands="_", formatter=formatter, decimal=decimal, precision=precision + )._translate(True, True) + assert "1_000_000" in result["body"][0][col]["display_value"] + + styler = DataFrame([[1 + 1000000.123456789j]], index=[1 + 1000000.123456789j]).style + result = getattr(styler, func)( # testing complex + thousands="_", formatter=formatter, decimal=decimal, precision=precision + )._translate(True, True) + assert "1_000_000" in result["body"][0][col]["display_value"] + + +@pytest.mark.parametrize("formatter", [None, "{:,.4f}"]) +@pytest.mark.parametrize("thousands", [None, ",", "*"]) +@pytest.mark.parametrize("precision", [None, 4]) +@pytest.mark.parametrize("func, col", [("format", 1), ("format_index", 0)]) +def test_format_decimal(formatter, thousands, precision, func, col): + styler = DataFrame([[1000000.123456789]], index=[1000000.123456789]).style + result = getattr(styler, func)( # testing float + decimal="_", formatter=formatter, thousands=thousands, precision=precision + )._translate(True, True) + assert "000_123" in result["body"][0][col]["display_value"] + + styler = DataFrame([[1 + 1000000.123456789j]], index=[1 + 1000000.123456789j]).style + result = getattr(styler, func)( # testing complex + decimal="_", formatter=formatter, thousands=thousands, precision=precision + )._translate(True, True) + assert "000_123" in result["body"][0][col]["display_value"] + + +def test_str_escape_error(): + msg = "`escape` only permitted in {'html', 'latex', 'latex-math'}, got " + with pytest.raises(ValueError, match=msg): + _str_escape("text", "bad_escape") + + with pytest.raises(ValueError, match=msg): + _str_escape("text", []) + + _str_escape(2.00, "bad_escape") # OK since dtype is float + + +def test_long_int_formatting(): + df = DataFrame(data=[[1234567890123456789]], columns=["test"]) + styler = df.style + ctx = styler._translate(True, True) + assert ctx["body"][0][1]["display_value"] == "1234567890123456789" + + styler = df.style.format(thousands="_") + ctx = styler._translate(True, True) + assert ctx["body"][0][1]["display_value"] == "1_234_567_890_123_456_789" + + +def test_format_options(): + df = DataFrame({"int": [2000, 1], "float": [1.009, None], "str": ["&<", "&~"]}) + ctx = df.style._translate(True, True) + + # test option: na_rep + assert ctx["body"][1][2]["display_value"] == "nan" + with option_context("styler.format.na_rep", "MISSING"): + ctx_with_op = df.style._translate(True, True) + assert ctx_with_op["body"][1][2]["display_value"] == "MISSING" + + # test option: decimal and precision + assert ctx["body"][0][2]["display_value"] == "1.009000" + with option_context("styler.format.decimal", "_"): + ctx_with_op = df.style._translate(True, True) + assert ctx_with_op["body"][0][2]["display_value"] == "1_009000" + with option_context("styler.format.precision", 2): + ctx_with_op = df.style._translate(True, True) + assert ctx_with_op["body"][0][2]["display_value"] == "1.01" + + # test option: thousands + assert ctx["body"][0][1]["display_value"] == "2000" + with option_context("styler.format.thousands", "_"): + ctx_with_op = df.style._translate(True, True) + assert ctx_with_op["body"][0][1]["display_value"] == "2_000" + + # test option: escape + assert ctx["body"][0][3]["display_value"] == "&<" + assert ctx["body"][1][3]["display_value"] == "&~" + with option_context("styler.format.escape", "html"): + ctx_with_op = df.style._translate(True, True) + assert ctx_with_op["body"][0][3]["display_value"] == "&<" + with option_context("styler.format.escape", "latex"): + ctx_with_op = df.style._translate(True, True) + assert ctx_with_op["body"][1][3]["display_value"] == "\\&\\textasciitilde " + with option_context("styler.format.escape", "latex-math"): + ctx_with_op = df.style._translate(True, True) + assert ctx_with_op["body"][1][3]["display_value"] == "\\&\\textasciitilde " + + # test option: formatter + with option_context("styler.format.formatter", {"int": "{:,.2f}"}): + ctx_with_op = df.style._translate(True, True) + assert ctx_with_op["body"][0][1]["display_value"] == "2,000.00" + + +def test_precision_zero(df): + styler = Styler(df, precision=0) + ctx = styler._translate(True, True) + assert ctx["body"][0][2]["display_value"] == "-1" + assert ctx["body"][1][2]["display_value"] == "-1" + + +@pytest.mark.parametrize( + "formatter, exp", + [ + (lambda x: f"{x:.3f}", "9.000"), + ("{:.2f}", "9.00"), + ({0: "{:.1f}"}, "9.0"), + (None, "9"), + ], +) +def test_formatter_options_validator(formatter, exp): + df = DataFrame([[9]]) + with option_context("styler.format.formatter", formatter): + assert f" {exp} " in df.style.to_latex() + + +def test_formatter_options_raises(): + msg = "Value must be an instance of" + with pytest.raises(ValueError, match=msg): + with option_context("styler.format.formatter", ["bad", "type"]): + DataFrame().style.to_latex() + + +def test_1level_multiindex(): + # GH 43383 + midx = MultiIndex.from_product([[1, 2]], names=[""]) + df = DataFrame(-1, index=midx, columns=[0, 1]) + ctx = df.style._translate(True, True) + assert ctx["body"][0][0]["display_value"] == "1" + assert ctx["body"][0][0]["is_visible"] is True + assert ctx["body"][1][0]["display_value"] == "2" + assert ctx["body"][1][0]["is_visible"] is True + + +def test_boolean_format(): + # gh 46384: booleans do not collapse to integer representation on display + df = DataFrame([[True, False]]) + ctx = df.style._translate(True, True) + assert ctx["body"][0][1]["display_value"] is True + assert ctx["body"][0][2]["display_value"] is False + + +@pytest.mark.parametrize( + "hide, labels", + [ + (False, [1, 2]), + (True, [1, 2, 3, 4]), + ], +) +def test_relabel_raise_length(styler_multi, hide, labels): + if hide: + styler_multi.hide(axis=0, subset=[("X", "x"), ("Y", "y")]) + with pytest.raises(ValueError, match="``labels`` must be of length equal"): + styler_multi.relabel_index(labels=labels) + + +def test_relabel_index(styler_multi): + labels = [(1, 2), (3, 4)] + styler_multi.hide(axis=0, subset=[("X", "x"), ("Y", "y")]) + styler_multi.relabel_index(labels=labels) + ctx = styler_multi._translate(True, True) + assert {"value": "X", "display_value": 1}.items() <= ctx["body"][0][0].items() + assert {"value": "y", "display_value": 2}.items() <= ctx["body"][0][1].items() + assert {"value": "Y", "display_value": 3}.items() <= ctx["body"][1][0].items() + assert {"value": "x", "display_value": 4}.items() <= ctx["body"][1][1].items() + + +def test_relabel_columns(styler_multi): + labels = [(1, 2), (3, 4)] + styler_multi.hide(axis=1, subset=[("A", "a"), ("B", "b")]) + styler_multi.relabel_index(axis=1, labels=labels) + ctx = styler_multi._translate(True, True) + assert {"value": "A", "display_value": 1}.items() <= ctx["head"][0][3].items() + assert {"value": "B", "display_value": 3}.items() <= ctx["head"][0][4].items() + assert {"value": "b", "display_value": 2}.items() <= ctx["head"][1][3].items() + assert {"value": "a", "display_value": 4}.items() <= ctx["head"][1][4].items() + + +def test_relabel_roundtrip(styler): + styler.relabel_index(["{}", "{}"]) + ctx = styler._translate(True, True) + assert {"value": "x", "display_value": "x"}.items() <= ctx["body"][0][0].items() + assert {"value": "y", "display_value": "y"}.items() <= ctx["body"][1][0].items() diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/test_highlight.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/test_highlight.py new file mode 100644 index 0000000000000000000000000000000000000000..3d59719010ee03cc53373a1c96f5f8c5611d7681 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/test_highlight.py @@ -0,0 +1,218 @@ +import numpy as np +import pytest + +from pandas import ( + NA, + DataFrame, + IndexSlice, +) + +pytest.importorskip("jinja2") + +from pandas.io.formats.style import Styler + + +@pytest.fixture(params=[(None, "float64"), (NA, "Int64")]) +def df(request): + # GH 45804 + return DataFrame( + {"A": [0, np.nan, 10], "B": [1, request.param[0], 2]}, dtype=request.param[1] + ) + + +@pytest.fixture +def styler(df): + return Styler(df, uuid_len=0) + + +def test_highlight_null(styler): + result = styler.highlight_null()._compute().ctx + expected = { + (1, 0): [("background-color", "red")], + (1, 1): [("background-color", "red")], + } + assert result == expected + + +def test_highlight_null_subset(styler): + # GH 31345 + result = ( + styler.highlight_null(color="red", subset=["A"]) + .highlight_null(color="green", subset=["B"]) + ._compute() + .ctx + ) + expected = { + (1, 0): [("background-color", "red")], + (1, 1): [("background-color", "green")], + } + assert result == expected + + +@pytest.mark.parametrize("f", ["highlight_min", "highlight_max"]) +def test_highlight_minmax_basic(df, f): + expected = { + (0, 1): [("background-color", "red")], + # ignores NaN row, + (2, 0): [("background-color", "red")], + } + if f == "highlight_min": + df = -df + result = getattr(df.style, f)(axis=1, color="red")._compute().ctx + assert result == expected + + +@pytest.mark.parametrize("f", ["highlight_min", "highlight_max"]) +@pytest.mark.parametrize( + "kwargs", + [ + {"axis": None, "color": "red"}, # test axis + {"axis": 0, "subset": ["A"], "color": "red"}, # test subset and ignores NaN + {"axis": None, "props": "background-color: red"}, # test props + ], +) +def test_highlight_minmax_ext(df, f, kwargs): + expected = {(2, 0): [("background-color", "red")]} + if f == "highlight_min": + df = -df + result = getattr(df.style, f)(**kwargs)._compute().ctx + assert result == expected + + +@pytest.mark.parametrize("f", ["highlight_min", "highlight_max"]) +@pytest.mark.parametrize("axis", [None, 0, 1]) +def test_highlight_minmax_nulls(f, axis): + # GH 42750 + expected = { + (1, 0): [("background-color", "yellow")], + (1, 1): [("background-color", "yellow")], + } + if axis == 1: + expected.update({(2, 1): [("background-color", "yellow")]}) + + if f == "highlight_max": + df = DataFrame({"a": [NA, 1, None], "b": [np.nan, 1, -1]}) + else: + df = DataFrame({"a": [NA, -1, None], "b": [np.nan, -1, 1]}) + + result = getattr(df.style, f)(axis=axis)._compute().ctx + assert result == expected + + +@pytest.mark.parametrize( + "kwargs", + [ + {"left": 0, "right": 1}, # test basic range + {"left": 0, "right": 1, "props": "background-color: yellow"}, # test props + {"left": -100, "right": 100, "subset": IndexSlice[[0, 1], :]}, # test subset + {"left": 0, "subset": IndexSlice[[0, 1], :]}, # test no right + {"right": 1}, # test no left + {"left": [0, 0, 11], "axis": 0}, # test left as sequence + {"left": DataFrame({"A": [0, 0, 11], "B": [1, 1, 11]}), "axis": None}, # axis + {"left": 0, "right": [0, 1], "axis": 1}, # test sequence right + ], +) +def test_highlight_between(styler, kwargs): + expected = { + (0, 0): [("background-color", "yellow")], + (0, 1): [("background-color", "yellow")], + } + result = styler.highlight_between(**kwargs)._compute().ctx + assert result == expected + + +@pytest.mark.parametrize( + "arg, map, axis", + [ + ("left", [1, 2], 0), # 0 axis has 3 elements not 2 + ("left", [1, 2, 3], 1), # 1 axis has 2 elements not 3 + ("left", np.array([[1, 2], [1, 2]]), None), # df is (2,3) not (2,2) + ("right", [1, 2], 0), # same tests as above for 'right' not 'left' + ("right", [1, 2, 3], 1), # .. + ("right", np.array([[1, 2], [1, 2]]), None), # .. + ], +) +def test_highlight_between_raises(arg, styler, map, axis): + msg = f"supplied '{arg}' is not correct shape" + with pytest.raises(ValueError, match=msg): + styler.highlight_between(**{arg: map, "axis": axis})._compute() + + +def test_highlight_between_raises2(styler): + msg = "values can be 'both', 'left', 'right', or 'neither'" + with pytest.raises(ValueError, match=msg): + styler.highlight_between(inclusive="badstring")._compute() + + with pytest.raises(ValueError, match=msg): + styler.highlight_between(inclusive=1)._compute() + + +@pytest.mark.parametrize( + "inclusive, expected", + [ + ( + "both", + { + (0, 0): [("background-color", "yellow")], + (0, 1): [("background-color", "yellow")], + }, + ), + ("neither", {}), + ("left", {(0, 0): [("background-color", "yellow")]}), + ("right", {(0, 1): [("background-color", "yellow")]}), + ], +) +def test_highlight_between_inclusive(styler, inclusive, expected): + kwargs = {"left": 0, "right": 1, "subset": IndexSlice[[0, 1], :]} + result = styler.highlight_between(**kwargs, inclusive=inclusive)._compute() + assert result.ctx == expected + + +@pytest.mark.parametrize( + "kwargs", + [ + {"q_left": 0.5, "q_right": 1, "axis": 0}, # base case + {"q_left": 0.5, "q_right": 1, "axis": None}, # test axis + {"q_left": 0, "q_right": 1, "subset": IndexSlice[2, :]}, # test subset + {"q_left": 0.5, "axis": 0}, # test no high + {"q_right": 1, "subset": IndexSlice[2, :], "axis": 1}, # test no low + {"q_left": 0.5, "axis": 0, "props": "background-color: yellow"}, # tst prop + ], +) +def test_highlight_quantile(styler, kwargs): + expected = { + (2, 0): [("background-color", "yellow")], + (2, 1): [("background-color", "yellow")], + } + result = styler.highlight_quantile(**kwargs)._compute().ctx + assert result == expected + + +@pytest.mark.parametrize( + "f,kwargs", + [ + ("highlight_min", {"axis": 1, "subset": IndexSlice[1, :]}), + ("highlight_max", {"axis": 0, "subset": [0]}), + ("highlight_quantile", {"axis": None, "q_left": 0.6, "q_right": 0.8}), + ("highlight_between", {"subset": [0]}), + ], +) +@pytest.mark.parametrize( + "df", + [ + DataFrame([[0, 10], [20, 30]], dtype=int), + DataFrame([[0, 10], [20, 30]], dtype=float), + DataFrame([[0, 10], [20, 30]], dtype="datetime64[ns]"), + DataFrame([[0, 10], [20, 30]], dtype=str), + DataFrame([[0, 10], [20, 30]], dtype="timedelta64[ns]"), + ], +) +def test_all_highlight_dtypes(f, kwargs, df): + if f == "highlight_quantile" and isinstance(df.iloc[0, 0], (str)): + return None # quantile incompatible with str + if f == "highlight_between": + kwargs["left"] = df.iloc[1, 0] # set the range low for testing + + expected = {(1, 0): [("background-color", "yellow")]} + result = getattr(df.style, f)(**kwargs)._compute().ctx + assert result == expected diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/test_html.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/test_html.py new file mode 100644 index 0000000000000000000000000000000000000000..1e345eb82ed3c31e7a5e0f89fa574aea84923dd7 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/test_html.py @@ -0,0 +1,1009 @@ +from textwrap import ( + dedent, + indent, +) + +import numpy as np +import pytest + +from pandas import ( + DataFrame, + MultiIndex, + option_context, +) + +jinja2 = pytest.importorskip("jinja2") +from pandas.io.formats.style import Styler + + +@pytest.fixture +def env(): + loader = jinja2.PackageLoader("pandas", "io/formats/templates") + env = jinja2.Environment(loader=loader, trim_blocks=True) + return env + + +@pytest.fixture +def styler(): + return Styler(DataFrame([[2.61], [2.69]], index=["a", "b"], columns=["A"])) + + +@pytest.fixture +def styler_mi(): + midx = MultiIndex.from_product([["a", "b"], ["c", "d"]]) + return Styler(DataFrame(np.arange(16).reshape(4, 4), index=midx, columns=midx)) + + +@pytest.fixture +def tpl_style(env): + return env.get_template("html_style.tpl") + + +@pytest.fixture +def tpl_table(env): + return env.get_template("html_table.tpl") + + +def test_html_template_extends_options(): + # make sure if templates are edited tests are updated as are setup fixtures + # to understand the dependency + with open("pandas/io/formats/templates/html.tpl", encoding="utf-8") as file: + result = file.read() + assert "{% include html_style_tpl %}" in result + assert "{% include html_table_tpl %}" in result + + +def test_exclude_styles(styler): + result = styler.to_html(exclude_styles=True, doctype_html=True) + expected = dedent( + """\ + + + + + + +
<div></div>"A&B"NA$ "A"$ A&BNA + ... + + Using a ``formatter`` with LaTeX ``escape``. + + >>> df = pd.DataFrame([[1, 2, 3]], columns=["123", "~", "$%#"]) + >>> df.style.format_index("\\textbf{{{}}}", escape="latex", axis=1).to_latex() + ... # doctest: +SKIP + \begin{tabular}{lrrr} + {} & {\textbf{123}} & {\textbf{\textasciitilde }} & {\textbf{\$\%\#}} \\ + 0 & 1 & 2 & 3 \\ + \end{tabular} + """ + axis = self.data._get_axis_number(axis) + if axis == 0: + display_funcs_, obj = self._display_funcs_index, self.index + else: + display_funcs_, obj = self._display_funcs_columns, self.columns + levels_ = refactor_levels(level, obj) + + if all( + ( + formatter is None, + level is None, + precision is None, + decimal == ".", + thousands is None, + na_rep is None, + escape is None, + hyperlinks is None, + ) + ): + display_funcs_.clear() + return self # clear the formatter / revert to default and avoid looping + + if not isinstance(formatter, dict): + formatter = {level: formatter for level in levels_} + else: + formatter = { + obj._get_level_number(level): formatter_ + for level, formatter_ in formatter.items() + } + + for lvl in levels_: + format_func = _maybe_wrap_formatter( + formatter.get(lvl), + na_rep=na_rep, + precision=precision, + decimal=decimal, + thousands=thousands, + escape=escape, + hyperlinks=hyperlinks, + ) + + for idx in [(i, lvl) if axis == 0 else (lvl, i) for i in range(len(obj))]: + display_funcs_[idx] = format_func + + return self + + def relabel_index( + self, + labels: Sequence | Index, + axis: Axis = 0, + level: Level | list[Level] | None = None, + ) -> StylerRenderer: + r""" + Relabel the index, or column header, keys to display a set of specified values. + + .. versionadded:: 1.5.0 + + Parameters + ---------- + labels : list-like or Index + New labels to display. Must have same length as the underlying values not + hidden. + axis : {"index", 0, "columns", 1} + Apply to the index or columns. + level : int, str, list, optional + The level(s) over which to apply the new labels. If `None` will apply + to all levels of an Index or MultiIndex which are not hidden. + + Returns + ------- + Styler + + See Also + -------- + Styler.format_index: Format the text display value of index or column headers. + Styler.hide: Hide the index, column headers, or specified data from display. + + Notes + ----- + As part of Styler, this method allows the display of an index to be + completely user-specified without affecting the underlying DataFrame data, + index, or column headers. This means that the flexibility of indexing is + maintained whilst the final display is customisable. + + Since Styler is designed to be progressively constructed with method chaining, + this method is adapted to react to the **currently specified hidden elements**. + This is useful because it means one does not have to specify all the new + labels if the majority of an index, or column headers, have already been hidden. + The following produce equivalent display (note the length of ``labels`` in + each case). + + .. code-block:: python + + # relabel first, then hide + df = pd.DataFrame({"col": ["a", "b", "c"]}) + df.style.relabel_index(["A", "B", "C"]).hide([0,1]) + # hide first, then relabel + df = pd.DataFrame({"col": ["a", "b", "c"]}) + df.style.hide([0,1]).relabel_index(["C"]) + + This method should be used, rather than :meth:`Styler.format_index`, in one of + the following cases (see examples): + + - A specified set of labels are required which are not a function of the + underlying index keys. + - The function of the underlying index keys requires a counter variable, + such as those available upon enumeration. + + Examples + -------- + Basic use + + >>> df = pd.DataFrame({"col": ["a", "b", "c"]}) + >>> df.style.relabel_index(["A", "B", "C"]) # doctest: +SKIP + col + A a + B b + C c + + Chaining with pre-hidden elements + + >>> df.style.hide([0,1]).relabel_index(["C"]) # doctest: +SKIP + col + C c + + Using a MultiIndex + + >>> midx = pd.MultiIndex.from_product([[0, 1], [0, 1], [0, 1]]) + >>> df = pd.DataFrame({"col": list(range(8))}, index=midx) + >>> styler = df.style # doctest: +SKIP + col + 0 0 0 0 + 1 1 + 1 0 2 + 1 3 + 1 0 0 4 + 1 5 + 1 0 6 + 1 7 + >>> styler.hide((midx.get_level_values(0)==0)|(midx.get_level_values(1)==0)) + ... # doctest: +SKIP + >>> styler.hide(level=[0,1]) # doctest: +SKIP + >>> styler.relabel_index(["binary6", "binary7"]) # doctest: +SKIP + col + binary6 6 + binary7 7 + + We can also achieve the above by indexing first and then re-labeling + + >>> styler = df.loc[[(1,1,0), (1,1,1)]].style + >>> styler.hide(level=[0,1]).relabel_index(["binary6", "binary7"]) + ... # doctest: +SKIP + col + binary6 6 + binary7 7 + + Defining a formatting function which uses an enumeration counter. Also note + that the value of the index key is passed in the case of string labels so it + can also be inserted into the label, using curly brackets (or double curly + brackets if the string if pre-formatted), + + >>> df = pd.DataFrame({"samples": np.random.rand(10)}) + >>> styler = df.loc[np.random.randint(0,10,3)].style + >>> styler.relabel_index([f"sample{i+1} ({{}})" for i in range(3)]) + ... # doctest: +SKIP + samples + sample1 (5) 0.315811 + sample2 (0) 0.495941 + sample3 (2) 0.067946 + """ + axis = self.data._get_axis_number(axis) + if axis == 0: + display_funcs_, obj = self._display_funcs_index, self.index + hidden_labels, hidden_lvls = self.hidden_rows, self.hide_index_ + else: + display_funcs_, obj = self._display_funcs_columns, self.columns + hidden_labels, hidden_lvls = self.hidden_columns, self.hide_columns_ + visible_len = len(obj) - len(set(hidden_labels)) + if len(labels) != visible_len: + raise ValueError( + "``labels`` must be of length equal to the number of " + f"visible labels along ``axis`` ({visible_len})." + ) + + if level is None: + level = [i for i in range(obj.nlevels) if not hidden_lvls[i]] + levels_ = refactor_levels(level, obj) + + def alias_(x, value): + if isinstance(value, str): + return value.format(x) + return value + + for ai, i in enumerate([i for i in range(len(obj)) if i not in hidden_labels]): + if len(levels_) == 1: + idx = (i, levels_[0]) if axis == 0 else (levels_[0], i) + display_funcs_[idx] = partial(alias_, value=labels[ai]) + else: + for aj, lvl in enumerate(levels_): + idx = (i, lvl) if axis == 0 else (lvl, i) + display_funcs_[idx] = partial(alias_, value=labels[ai][aj]) + + return self + + +def _element( + html_element: str, + html_class: str | None, + value: Any, + is_visible: bool, + **kwargs, +) -> dict: + """ + Template to return container with information for a `` cells in the HTML result. + + Parameters + ---------- + css_name: str, default "pd-t" + Name of the CSS class that controls visualisation of tooltips. + css_props: list-like, default; see Notes + List of (attr, value) tuples defining properties of the CSS class. + tooltips: DataFrame, default empty + DataFrame of strings aligned with underlying Styler data for tooltip + display. + + Notes + ----- + The default properties for the tooltip CSS class are: + + - visibility: hidden + - position: absolute + - z-index: 1 + - background-color: black + - color: white + - transform: translate(-20px, -20px) + + Hidden visibility is a key prerequisite to the hover functionality, and should + always be included in any manual properties specification. + """ + + def __init__( + self, + css_props: CSSProperties = [ + ("visibility", "hidden"), + ("position", "absolute"), + ("z-index", 1), + ("background-color", "black"), + ("color", "white"), + ("transform", "translate(-20px, -20px)"), + ], + css_name: str = "pd-t", + tooltips: DataFrame = DataFrame(), + ) -> None: + self.class_name = css_name + self.class_properties = css_props + self.tt_data = tooltips + self.table_styles: CSSStyles = [] + + @property + def _class_styles(self): + """ + Combine the ``_Tooltips`` CSS class name and CSS properties to the format + required to extend the underlying ``Styler`` `table_styles` to allow + tooltips to render in HTML. + + Returns + ------- + styles : List + """ + return [ + { + "selector": f".{self.class_name}", + "props": maybe_convert_css_to_tuples(self.class_properties), + } + ] + + def _pseudo_css(self, uuid: str, name: str, row: int, col: int, text: str): + """ + For every table data-cell that has a valid tooltip (not None, NaN or + empty string) must create two pseudo CSS entries for the specific + element id which are added to overall table styles: + an on hover visibility change and a content change + dependent upon the user's chosen display string. + + For example: + [{"selector": "T__row1_col1:hover .pd-t", + "props": [("visibility", "visible")]}, + {"selector": "T__row1_col1 .pd-t::after", + "props": [("content", "Some Valid Text String")]}] + + Parameters + ---------- + uuid: str + The uuid of the Styler instance + name: str + The css-name of the class used for styling tooltips + row : int + The row index of the specified tooltip string data + col : int + The col index of the specified tooltip string data + text : str + The textual content of the tooltip to be displayed in HTML. + + Returns + ------- + pseudo_css : List + """ + selector_id = "#T_" + uuid + "_row" + str(row) + "_col" + str(col) + return [ + { + "selector": selector_id + f":hover .{name}", + "props": [("visibility", "visible")], + }, + { + "selector": selector_id + f" .{name}::after", + "props": [("content", f'"{text}"')], + }, + ] + + def _translate(self, styler: StylerRenderer, d: dict): + """ + Mutate the render dictionary to allow for tooltips: + + - Add ```` HTML element to each data cells ``display_value``. Ignores + headers. + - Add table level CSS styles to control pseudo classes. + + Parameters + ---------- + styler_data : DataFrame + Underlying ``Styler`` DataFrame used for reindexing. + uuid : str + The underlying ``Styler`` uuid for CSS id. + d : dict + The dictionary prior to final render + + Returns + ------- + render_dict : Dict + """ + self.tt_data = self.tt_data.reindex_like(styler.data) + if self.tt_data.empty: + return d + + name = self.class_name + mask = (self.tt_data.isna()) | (self.tt_data.eq("")) # empty string = no ttip + self.table_styles = [ + style + for sublist in [ + self._pseudo_css(styler.uuid, name, i, j, str(self.tt_data.iloc[i, j])) + for i in range(len(self.tt_data.index)) + for j in range(len(self.tt_data.columns)) + if not ( + mask.iloc[i, j] + or i in styler.hidden_rows + or j in styler.hidden_columns + ) + ] + for style in sublist + ] + + if self.table_styles: + # add span class to every cell only if at least 1 non-empty tooltip + for row in d["body"]: + for item in row: + if item["type"] == "td": + item["display_value"] = ( + str(item["display_value"]) + + f'' + ) + d["table_styles"].extend(self._class_styles) + d["table_styles"].extend(self.table_styles) + + return d + + +def _parse_latex_table_wrapping(table_styles: CSSStyles, caption: str | None) -> bool: + """ + Indicate whether LaTeX {tabular} should be wrapped with a {table} environment. + + Parses the `table_styles` and detects any selectors which must be included outside + of {tabular}, i.e. indicating that wrapping must occur, and therefore return True, + or if a caption exists and requires similar. + """ + IGNORED_WRAPPERS = ["toprule", "midrule", "bottomrule", "column_format"] + # ignored selectors are included with {tabular} so do not need wrapping + return ( + table_styles is not None + and any(d["selector"] not in IGNORED_WRAPPERS for d in table_styles) + ) or caption is not None + + +def _parse_latex_table_styles(table_styles: CSSStyles, selector: str) -> str | None: + """ + Return the first 'props' 'value' from ``tables_styles`` identified by ``selector``. + + Examples + -------- + >>> table_styles = [{'selector': 'foo', 'props': [('attr','value')]}, + ... {'selector': 'bar', 'props': [('attr', 'overwritten')]}, + ... {'selector': 'bar', 'props': [('a1', 'baz'), ('a2', 'ignore')]}] + >>> _parse_latex_table_styles(table_styles, selector='bar') + 'baz' + + Notes + ----- + The replacement of "§" with ":" is to avoid the CSS problem where ":" has structural + significance and cannot be used in LaTeX labels, but is often required by them. + """ + for style in table_styles[::-1]: # in reverse for most recently applied style + if style["selector"] == selector: + return str(style["props"][0][1]).replace("§", ":") + return None + + +def _parse_latex_cell_styles( + latex_styles: CSSList, display_value: str, convert_css: bool = False +) -> str: + r""" + Mutate the ``display_value`` string including LaTeX commands from ``latex_styles``. + + This method builds a recursive latex chain of commands based on the + CSSList input, nested around ``display_value``. + + If a CSS style is given as ('', '') this is translated to + '\{display_value}', and this value is treated as the + display value for the next iteration. + + The most recent style forms the inner component, for example for styles: + `[('c1', 'o1'), ('c2', 'o2')]` this returns: `\c1o1{\c2o2{display_value}}` + + Sometimes latex commands have to be wrapped with curly braces in different ways: + We create some parsing flags to identify the different behaviours: + + - `--rwrap` : `\{}` + - `--wrap` : `{\ }` + - `--nowrap` : `\ ` + - `--lwrap` : `{\} ` + - `--dwrap` : `{\}{}` + + For example for styles: + `[('c1', 'o1--wrap'), ('c2', 'o2')]` this returns: `{\c1o1 \c2o2{display_value}} + """ + if convert_css: + latex_styles = _parse_latex_css_conversion(latex_styles) + for command, options in latex_styles[::-1]: # in reverse for most recent style + formatter = { + "--wrap": f"{{\\{command}--to_parse {display_value}}}", + "--nowrap": f"\\{command}--to_parse {display_value}", + "--lwrap": f"{{\\{command}--to_parse}} {display_value}", + "--rwrap": f"\\{command}--to_parse{{{display_value}}}", + "--dwrap": f"{{\\{command}--to_parse}}{{{display_value}}}", + } + display_value = f"\\{command}{options} {display_value}" + for arg in ["--nowrap", "--wrap", "--lwrap", "--rwrap", "--dwrap"]: + if arg in str(options): + display_value = formatter[arg].replace( + "--to_parse", _parse_latex_options_strip(value=options, arg=arg) + ) + break # only ever one purposeful entry + return display_value + + +def _parse_latex_header_span( + cell: dict[str, Any], + multirow_align: str, + multicol_align: str, + wrap: bool = False, + convert_css: bool = False, +) -> str: + r""" + Refactor the cell `display_value` if a 'colspan' or 'rowspan' attribute is present. + + 'rowspan' and 'colspan' do not occur simultaneouly. If they are detected then + the `display_value` is altered to a LaTeX `multirow` or `multicol` command + respectively, with the appropriate cell-span. + + ``wrap`` is used to enclose the `display_value` in braces which is needed for + column headers using an siunitx package. + + Requires the package {multirow}, whereas multicol support is usually built in + to the {tabular} environment. + + Examples + -------- + >>> cell = {'cellstyle': '', 'display_value':'text', 'attributes': 'colspan="3"'} + >>> _parse_latex_header_span(cell, 't', 'c') + '\\multicolumn{3}{c}{text}' + """ + display_val = _parse_latex_cell_styles( + cell["cellstyle"], cell["display_value"], convert_css + ) + if "attributes" in cell: + attrs = cell["attributes"] + if 'colspan="' in attrs: + colspan = attrs[attrs.find('colspan="') + 9 :] # len('colspan="') = 9 + colspan = int(colspan[: colspan.find('"')]) + if "naive-l" == multicol_align: + out = f"{{{display_val}}}" if wrap else f"{display_val}" + blanks = " & {}" if wrap else " &" + return out + blanks * (colspan - 1) + elif "naive-r" == multicol_align: + out = f"{{{display_val}}}" if wrap else f"{display_val}" + blanks = "{} & " if wrap else "& " + return blanks * (colspan - 1) + out + return f"\\multicolumn{{{colspan}}}{{{multicol_align}}}{{{display_val}}}" + elif 'rowspan="' in attrs: + if multirow_align == "naive": + return display_val + rowspan = attrs[attrs.find('rowspan="') + 9 :] + rowspan = int(rowspan[: rowspan.find('"')]) + return f"\\multirow[{multirow_align}]{{{rowspan}}}{{*}}{{{display_val}}}" + if wrap: + return f"{{{display_val}}}" + else: + return display_val + + +def _parse_latex_options_strip(value: str | float, arg: str) -> str: + """ + Strip a css_value which may have latex wrapping arguments, css comment identifiers, + and whitespaces, to a valid string for latex options parsing. + + For example: 'red /* --wrap */ ' --> 'red' + """ + return str(value).replace(arg, "").replace("/*", "").replace("*/", "").strip() + + +def _parse_latex_css_conversion(styles: CSSList) -> CSSList: + """ + Convert CSS (attribute,value) pairs to equivalent LaTeX (command,options) pairs. + + Ignore conversion if tagged with `--latex` option, skipped if no conversion found. + """ + + def font_weight(value, arg): + if value in ("bold", "bolder"): + return "bfseries", f"{arg}" + return None + + def font_style(value, arg): + if value == "italic": + return "itshape", f"{arg}" + if value == "oblique": + return "slshape", f"{arg}" + return None + + def color(value, user_arg, command, comm_arg): + """ + CSS colors have 5 formats to process: + + - 6 digit hex code: "#ff23ee" --> [HTML]{FF23EE} + - 3 digit hex code: "#f0e" --> [HTML]{FF00EE} + - rgba: rgba(128, 255, 0, 0.5) --> [rgb]{0.502, 1.000, 0.000} + - rgb: rgb(128, 255, 0,) --> [rbg]{0.502, 1.000, 0.000} + - string: red --> {red} + + Additionally rgb or rgba can be expressed in % which is also parsed. + """ + arg = user_arg if user_arg != "" else comm_arg + + if value[0] == "#" and len(value) == 7: # color is hex code + return command, f"[HTML]{{{value[1:].upper()}}}{arg}" + if value[0] == "#" and len(value) == 4: # color is short hex code + val = f"{value[1].upper()*2}{value[2].upper()*2}{value[3].upper()*2}" + return command, f"[HTML]{{{val}}}{arg}" + elif value[:3] == "rgb": # color is rgb or rgba + r = re.findall("(?<=\\()[0-9\\s%]+(?=,)", value)[0].strip() + r = float(r[:-1]) / 100 if "%" in r else int(r) / 255 + g = re.findall("(?<=,)[0-9\\s%]+(?=,)", value)[0].strip() + g = float(g[:-1]) / 100 if "%" in g else int(g) / 255 + if value[3] == "a": # color is rgba + b = re.findall("(?<=,)[0-9\\s%]+(?=,)", value)[1].strip() + else: # color is rgb + b = re.findall("(?<=,)[0-9\\s%]+(?=\\))", value)[0].strip() + b = float(b[:-1]) / 100 if "%" in b else int(b) / 255 + return command, f"[rgb]{{{r:.3f}, {g:.3f}, {b:.3f}}}{arg}" + else: + return command, f"{{{value}}}{arg}" # color is likely string-named + + CONVERTED_ATTRIBUTES: dict[str, Callable] = { + "font-weight": font_weight, + "background-color": partial(color, command="cellcolor", comm_arg="--lwrap"), + "color": partial(color, command="color", comm_arg=""), + "font-style": font_style, + } + + latex_styles: CSSList = [] + for attribute, value in styles: + if isinstance(value, str) and "--latex" in value: + # return the style without conversion but drop '--latex' + latex_styles.append((attribute, value.replace("--latex", ""))) + if attribute in CONVERTED_ATTRIBUTES: + arg = "" + for x in ["--wrap", "--nowrap", "--lwrap", "--dwrap", "--rwrap"]: + if x in str(value): + arg, value = x, _parse_latex_options_strip(value, x) + break + latex_style = CONVERTED_ATTRIBUTES[attribute](value, arg) + if latex_style is not None: + latex_styles.extend([latex_style]) + return latex_styles + + +def _escape_latex(s: str) -> str: + r""" + Replace the characters ``&``, ``%``, ``$``, ``#``, ``_``, ``{``, ``}``, + ``~``, ``^``, and ``\`` in the string with LaTeX-safe sequences. + + Use this if you need to display text that might contain such characters in LaTeX. + + Parameters + ---------- + s : str + Input to be escaped + + Return + ------ + str : + Escaped string + """ + return ( + s.replace("\\", "ab2§=§8yz") # rare string for final conversion: avoid \\ clash + .replace("ab2§=§8yz ", "ab2§=§8yz\\space ") # since \backslash gobbles spaces + .replace("&", "\\&") + .replace("%", "\\%") + .replace("$", "\\$") + .replace("#", "\\#") + .replace("_", "\\_") + .replace("{", "\\{") + .replace("}", "\\}") + .replace("~ ", "~\\space ") # since \textasciitilde gobbles spaces + .replace("~", "\\textasciitilde ") + .replace("^ ", "^\\space ") # since \textasciicircum gobbles spaces + .replace("^", "\\textasciicircum ") + .replace("ab2§=§8yz", "\\textbackslash ") + ) + + +def _math_mode_with_dollar(s: str) -> str: + r""" + All characters in LaTeX math mode are preserved. + + The substrings in LaTeX math mode, which start with + the character ``$`` and end with ``$``, are preserved + without escaping. Otherwise regular LaTeX escaping applies. + + Parameters + ---------- + s : str + Input to be escaped + + Return + ------ + str : + Escaped string + """ + s = s.replace(r"\$", r"rt8§=§7wz") + pattern = re.compile(r"\$.*?\$") + pos = 0 + ps = pattern.search(s, pos) + res = [] + while ps: + res.append(_escape_latex(s[pos : ps.span()[0]])) + res.append(ps.group()) + pos = ps.span()[1] + ps = pattern.search(s, pos) + + res.append(_escape_latex(s[pos : len(s)])) + return "".join(res).replace(r"rt8§=§7wz", r"\$") + + +def _math_mode_with_parentheses(s: str) -> str: + r""" + All characters in LaTeX math mode are preserved. + + The substrings in LaTeX math mode, which start with + the character ``\(`` and end with ``\)``, are preserved + without escaping. Otherwise regular LaTeX escaping applies. + + Parameters + ---------- + s : str + Input to be escaped + + Return + ------ + str : + Escaped string + """ + s = s.replace(r"\(", r"LEFT§=§6yzLEFT").replace(r"\)", r"RIGHTab5§=§RIGHT") + res = [] + for item in re.split(r"LEFT§=§6yz|ab5§=§RIGHT", s): + if item.startswith("LEFT") and item.endswith("RIGHT"): + res.append(item.replace("LEFT", r"\(").replace("RIGHT", r"\)")) + elif "LEFT" in item and "RIGHT" in item: + res.append( + _escape_latex(item).replace("LEFT", r"\(").replace("RIGHT", r"\)") + ) + else: + res.append( + _escape_latex(item) + .replace("LEFT", r"\textbackslash (") + .replace("RIGHT", r"\textbackslash )") + ) + return "".join(res) + + +def _escape_latex_math(s: str) -> str: + r""" + All characters in LaTeX math mode are preserved. + + The substrings in LaTeX math mode, which either are surrounded + by two characters ``$`` or start with the character ``\(`` and end with ``\)``, + are preserved without escaping. Otherwise regular LaTeX escaping applies. + + Parameters + ---------- + s : str + Input to be escaped + + Return + ------ + str : + Escaped string + """ + s = s.replace(r"\$", r"rt8§=§7wz") + ps_d = re.compile(r"\$.*?\$").search(s, 0) + ps_p = re.compile(r"\(.*?\)").search(s, 0) + mode = [] + if ps_d: + mode.append(ps_d.span()[0]) + if ps_p: + mode.append(ps_p.span()[0]) + if len(mode) == 0: + return _escape_latex(s.replace(r"rt8§=§7wz", r"\$")) + if s[mode[0]] == r"$": + return _math_mode_with_dollar(s.replace(r"rt8§=§7wz", r"\$")) + if s[mode[0] - 1 : mode[0] + 1] == r"\(": + return _math_mode_with_parentheses(s.replace(r"rt8§=§7wz", r"\$")) + else: + return _escape_latex(s.replace(r"rt8§=§7wz", r"\$")) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/formats/templates/html.tpl b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/formats/templates/html.tpl new file mode 100644 index 0000000000000000000000000000000000000000..8c63be3ad788a8abddf3588b2b9dd6d6126f5df3 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/formats/templates/html.tpl @@ -0,0 +1,16 @@ +{# Update the html_style/table_structure.html documentation too #} +{% if doctype_html %} + + + + +{% if not exclude_styles %}{% include html_style_tpl %}{% endif %} + + +{% include html_table_tpl %} + + +{% elif not doctype_html %} +{% if not exclude_styles %}{% include html_style_tpl %}{% endif %} +{% include html_table_tpl %} +{% endif %} diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/formats/templates/html_style.tpl b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/formats/templates/html_style.tpl new file mode 100644 index 0000000000000000000000000000000000000000..5c3fcd97f51bbec263399922579420dfa9ceef9c --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/formats/templates/html_style.tpl @@ -0,0 +1,26 @@ +{%- block before_style -%}{%- endblock before_style -%} +{% block style %} + +{% endblock style %} diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/formats/templates/html_table.tpl b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/formats/templates/html_table.tpl new file mode 100644 index 0000000000000000000000000000000000000000..17118d2bb21ccd185780d44c83a5242b12bd2a0d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/formats/templates/html_table.tpl @@ -0,0 +1,63 @@ +{% block before_table %}{% endblock before_table %} +{% block table %} +{% if exclude_styles %} + +{% else %} +
+{% endif %} +{% block caption %} +{% if caption and caption is string %} + +{% elif caption and caption is sequence %} + +{% endif %} +{% endblock caption %} +{% block thead %} + +{% block before_head_rows %}{% endblock %} +{% for r in head %} +{% block head_tr scoped %} + +{% if exclude_styles %} +{% for c in r %} +{% if c.is_visible != False %} + <{{c.type}} {{c.attributes}}>{{c.display_value}} +{% endif %} +{% endfor %} +{% else %} +{% for c in r %} +{% if c.is_visible != False %} + <{{c.type}} {%- if c.id is defined %} id="T_{{uuid}}_{{c.id}}" {%- endif %} class="{{c.class}}" {{c.attributes}}>{{c.display_value}} +{% endif %} +{% endfor %} +{% endif %} + +{% endblock head_tr %} +{% endfor %} +{% block after_head_rows %}{% endblock %} + +{% endblock thead %} +{% block tbody %} + +{% block before_rows %}{% endblock before_rows %} +{% for r in body %} +{% block tr scoped %} + +{% if exclude_styles %} +{% for c in r %}{% if c.is_visible != False %} + <{{c.type}} {{c.attributes}}>{{c.display_value}} +{% endif %}{% endfor %} +{% else %} +{% for c in r %}{% if c.is_visible != False %} + <{{c.type}} {%- if c.id is defined %} id="T_{{uuid}}_{{c.id}}" {%- endif %} class="{{c.class}}" {{c.attributes}}>{{c.display_value}} +{% endif %}{% endfor %} +{% endif %} + +{% endblock tr %} +{% endfor %} +{% block after_rows %}{% endblock after_rows %} + +{% endblock tbody %} +
{{caption}}{{caption[0]}}
+{% endblock table %} +{% block after_table %}{% endblock after_table %} diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/formats/templates/latex.tpl b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/formats/templates/latex.tpl new file mode 100644 index 0000000000000000000000000000000000000000..ae341bbc29823489d9d15e354fae0ce2e10a046d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/formats/templates/latex.tpl @@ -0,0 +1,5 @@ +{% if environment == "longtable" %} +{% include "latex_longtable.tpl" %} +{% else %} +{% include "latex_table.tpl" %} +{% endif %} diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/formats/templates/latex_longtable.tpl b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/formats/templates/latex_longtable.tpl new file mode 100644 index 0000000000000000000000000000000000000000..b97843eeb918da1b12f6f2edd585c8e42d6b7bb5 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/formats/templates/latex_longtable.tpl @@ -0,0 +1,82 @@ +\begin{longtable} +{%- set position = parse_table(table_styles, 'position') %} +{%- if position is not none %} +[{{position}}] +{%- endif %} +{%- set column_format = parse_table(table_styles, 'column_format') %} +{% raw %}{{% endraw %}{{column_format}}{% raw %}}{% endraw %} + +{% for style in table_styles %} +{% if style['selector'] not in ['position', 'position_float', 'caption', 'toprule', 'midrule', 'bottomrule', 'column_format', 'label'] %} +\{{style['selector']}}{{parse_table(table_styles, style['selector'])}} +{% endif %} +{% endfor %} +{% if caption and caption is string %} +\caption{% raw %}{{% endraw %}{{caption}}{% raw %}}{% endraw %} +{%- set label = parse_table(table_styles, 'label') %} +{%- if label is not none %} + \label{{label}} +{%- endif %} \\ +{% elif caption and caption is sequence %} +\caption[{{caption[1]}}]{% raw %}{{% endraw %}{{caption[0]}}{% raw %}}{% endraw %} +{%- set label = parse_table(table_styles, 'label') %} +{%- if label is not none %} + \label{{label}} +{%- endif %} \\ +{% else %} +{%- set label = parse_table(table_styles, 'label') %} +{%- if label is not none %} +\label{{label}} \\ +{% endif %} +{% endif %} +{% set toprule = parse_table(table_styles, 'toprule') %} +{% if toprule is not none %} +\{{toprule}} +{% endif %} +{% for row in head %} +{% for c in row %}{%- if not loop.first %} & {% endif %}{{parse_header(c, multirow_align, multicol_align, siunitx)}}{% endfor %} \\ +{% endfor %} +{% set midrule = parse_table(table_styles, 'midrule') %} +{% if midrule is not none %} +\{{midrule}} +{% endif %} +\endfirsthead +{% if caption and caption is string %} +\caption[]{% raw %}{{% endraw %}{{caption}}{% raw %}}{% endraw %} \\ +{% elif caption and caption is sequence %} +\caption[]{% raw %}{{% endraw %}{{caption[0]}}{% raw %}}{% endraw %} \\ +{% endif %} +{% if toprule is not none %} +\{{toprule}} +{% endif %} +{% for row in head %} +{% for c in row %}{%- if not loop.first %} & {% endif %}{{parse_header(c, multirow_align, multicol_align, siunitx)}}{% endfor %} \\ +{% endfor %} +{% if midrule is not none %} +\{{midrule}} +{% endif %} +\endhead +{% if midrule is not none %} +\{{midrule}} +{% endif %} +\multicolumn{% raw %}{{% endraw %}{{body[0]|length}}{% raw %}}{% endraw %}{r}{Continued on next page} \\ +{% if midrule is not none %} +\{{midrule}} +{% endif %} +\endfoot +{% set bottomrule = parse_table(table_styles, 'bottomrule') %} +{% if bottomrule is not none %} +\{{bottomrule}} +{% endif %} +\endlastfoot +{% for row in body %} +{% for c in row %}{% if not loop.first %} & {% endif %} + {%- if c.type == 'th' %}{{parse_header(c, multirow_align, multicol_align)}}{% else %}{{parse_cell(c.cellstyle, c.display_value, convert_css)}}{% endif %} +{%- endfor %} \\ +{% if clines and clines[loop.index] | length > 0 %} + {%- for cline in clines[loop.index] %}{% if not loop.first %} {% endif %}{{ cline }}{% endfor %} + +{% endif %} +{% endfor %} +\end{longtable} +{% raw %}{% endraw %} diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/formats/templates/latex_table.tpl b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/formats/templates/latex_table.tpl new file mode 100644 index 0000000000000000000000000000000000000000..7858cb4c945534a4d21cd4474460fd1abcf01f82 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/formats/templates/latex_table.tpl @@ -0,0 +1,57 @@ +{% if environment or parse_wrap(table_styles, caption) %} +\begin{% raw %}{{% endraw %}{{environment if environment else "table"}}{% raw %}}{% endraw %} +{%- set position = parse_table(table_styles, 'position') %} +{%- if position is not none %} +[{{position}}] +{%- endif %} + +{% set position_float = parse_table(table_styles, 'position_float') %} +{% if position_float is not none%} +\{{position_float}} +{% endif %} +{% if caption and caption is string %} +\caption{% raw %}{{% endraw %}{{caption}}{% raw %}}{% endraw %} + +{% elif caption and caption is sequence %} +\caption[{{caption[1]}}]{% raw %}{{% endraw %}{{caption[0]}}{% raw %}}{% endraw %} + +{% endif %} +{% for style in table_styles %} +{% if style['selector'] not in ['position', 'position_float', 'caption', 'toprule', 'midrule', 'bottomrule', 'column_format'] %} +\{{style['selector']}}{{parse_table(table_styles, style['selector'])}} +{% endif %} +{% endfor %} +{% endif %} +\begin{tabular} +{%- set column_format = parse_table(table_styles, 'column_format') %} +{% raw %}{{% endraw %}{{column_format}}{% raw %}}{% endraw %} + +{% set toprule = parse_table(table_styles, 'toprule') %} +{% if toprule is not none %} +\{{toprule}} +{% endif %} +{% for row in head %} +{% for c in row %}{%- if not loop.first %} & {% endif %}{{parse_header(c, multirow_align, multicol_align, siunitx, convert_css)}}{% endfor %} \\ +{% endfor %} +{% set midrule = parse_table(table_styles, 'midrule') %} +{% if midrule is not none %} +\{{midrule}} +{% endif %} +{% for row in body %} +{% for c in row %}{% if not loop.first %} & {% endif %} + {%- if c.type == 'th' %}{{parse_header(c, multirow_align, multicol_align, False, convert_css)}}{% else %}{{parse_cell(c.cellstyle, c.display_value, convert_css)}}{% endif %} +{%- endfor %} \\ +{% if clines and clines[loop.index] | length > 0 %} + {%- for cline in clines[loop.index] %}{% if not loop.first %} {% endif %}{{ cline }}{% endfor %} + +{% endif %} +{% endfor %} +{% set bottomrule = parse_table(table_styles, 'bottomrule') %} +{% if bottomrule is not none %} +\{{bottomrule}} +{% endif %} +\end{tabular} +{% if environment or parse_wrap(table_styles, caption) %} +\end{% raw %}{{% endraw %}{{environment if environment else "table"}}{% raw %}}{% endraw %} + +{% endif %} diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/formats/templates/string.tpl b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/formats/templates/string.tpl new file mode 100644 index 0000000000000000000000000000000000000000..06aeb2b4e413c61a912b535056c19c794d4b9c85 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/formats/templates/string.tpl @@ -0,0 +1,12 @@ +{% for r in head %} +{% for c in r %}{% if c["is_visible"] %} +{{ c["display_value"] }}{% if not loop.last %}{{ delimiter }}{% endif %} +{% endif %}{% endfor %} + +{% endfor %} +{% for r in body %} +{% for c in r %}{% if c["is_visible"] %} +{{ c["display_value"] }}{% if not loop.last %}{{ delimiter }}{% endif %} +{% endif %}{% endfor %} + +{% endfor %} diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/formats/xml.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/formats/xml.py new file mode 100644 index 0000000000000000000000000000000000000000..f56fca8d7ef4446727bfa34166b0c6b5a2856338 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/formats/xml.py @@ -0,0 +1,560 @@ +""" +:mod:`pandas.io.formats.xml` is a module for formatting data in XML. +""" +from __future__ import annotations + +import codecs +import io +from typing import ( + TYPE_CHECKING, + Any, + final, +) +import warnings + +from pandas.errors import AbstractMethodError +from pandas.util._decorators import ( + cache_readonly, + doc, +) + +from pandas.core.dtypes.common import is_list_like +from pandas.core.dtypes.missing import isna + +from pandas.core.shared_docs import _shared_docs + +from pandas.io.common import get_handle +from pandas.io.xml import ( + get_data_from_filepath, + preprocess_data, +) + +if TYPE_CHECKING: + from pandas._typing import ( + CompressionOptions, + FilePath, + ReadBuffer, + StorageOptions, + WriteBuffer, + ) + + from pandas import DataFrame + + +@doc( + storage_options=_shared_docs["storage_options"], + compression_options=_shared_docs["compression_options"] % "path_or_buffer", +) +class _BaseXMLFormatter: + """ + Subclass for formatting data in XML. + + Parameters + ---------- + path_or_buffer : str or file-like + This can be either a string of raw XML, a valid URL, + file or file-like object. + + index : bool + Whether to include index in xml document. + + row_name : str + Name for root of xml document. Default is 'data'. + + root_name : str + Name for row elements of xml document. Default is 'row'. + + na_rep : str + Missing data representation. + + attrs_cols : list + List of columns to write as attributes in row element. + + elem_cols : list + List of columns to write as children in row element. + + namespaces : dict + The namespaces to define in XML document as dicts with key + being namespace and value the URI. + + prefix : str + The prefix for each element in XML document including root. + + encoding : str + Encoding of xml object or document. + + xml_declaration : bool + Whether to include xml declaration at top line item in xml. + + pretty_print : bool + Whether to write xml document with line breaks and indentation. + + stylesheet : str or file-like + A URL, file, file-like object, or a raw string containing XSLT. + + {compression_options} + + .. versionchanged:: 1.4.0 Zstandard support. + + {storage_options} + + See also + -------- + pandas.io.formats.xml.EtreeXMLFormatter + pandas.io.formats.xml.LxmlXMLFormatter + + """ + + def __init__( + self, + frame: DataFrame, + path_or_buffer: FilePath | WriteBuffer[bytes] | WriteBuffer[str] | None = None, + index: bool = True, + root_name: str | None = "data", + row_name: str | None = "row", + na_rep: str | None = None, + attr_cols: list[str] | None = None, + elem_cols: list[str] | None = None, + namespaces: dict[str | None, str] | None = None, + prefix: str | None = None, + encoding: str = "utf-8", + xml_declaration: bool | None = True, + pretty_print: bool | None = True, + stylesheet: FilePath | ReadBuffer[str] | ReadBuffer[bytes] | None = None, + compression: CompressionOptions = "infer", + storage_options: StorageOptions | None = None, + ) -> None: + self.frame = frame + self.path_or_buffer = path_or_buffer + self.index = index + self.root_name = root_name + self.row_name = row_name + self.na_rep = na_rep + self.attr_cols = attr_cols + self.elem_cols = elem_cols + self.namespaces = namespaces + self.prefix = prefix + self.encoding = encoding + self.xml_declaration = xml_declaration + self.pretty_print = pretty_print + self.stylesheet = stylesheet + self.compression: CompressionOptions = compression + self.storage_options = storage_options + + self.orig_cols = self.frame.columns.tolist() + self.frame_dicts = self._process_dataframe() + + self._validate_columns() + self._validate_encoding() + self.prefix_uri = self._get_prefix_uri() + self._handle_indexes() + + def _build_tree(self) -> bytes: + """ + Build tree from data. + + This method initializes the root and builds attributes and elements + with optional namespaces. + """ + raise AbstractMethodError(self) + + @final + def _validate_columns(self) -> None: + """ + Validate elems_cols and attrs_cols. + + This method will check if columns is list-like. + + Raises + ------ + ValueError + * If value is not a list and less then length of nodes. + """ + if self.attr_cols and not is_list_like(self.attr_cols): + raise TypeError( + f"{type(self.attr_cols).__name__} is not a valid type for attr_cols" + ) + + if self.elem_cols and not is_list_like(self.elem_cols): + raise TypeError( + f"{type(self.elem_cols).__name__} is not a valid type for elem_cols" + ) + + @final + def _validate_encoding(self) -> None: + """ + Validate encoding. + + This method will check if encoding is among listed under codecs. + + Raises + ------ + LookupError + * If encoding is not available in codecs. + """ + + codecs.lookup(self.encoding) + + @final + def _process_dataframe(self) -> dict[int | str, dict[str, Any]]: + """ + Adjust Data Frame to fit xml output. + + This method will adjust underlying data frame for xml output, + including optionally replacing missing values and including indexes. + """ + + df = self.frame + + if self.index: + df = df.reset_index() + + if self.na_rep is not None: + with warnings.catch_warnings(): + warnings.filterwarnings( + "ignore", + "Downcasting object dtype arrays", + category=FutureWarning, + ) + df = df.fillna(self.na_rep) + + return df.to_dict(orient="index") + + @final + def _handle_indexes(self) -> None: + """ + Handle indexes. + + This method will add indexes into attr_cols or elem_cols. + """ + + if not self.index: + return + + first_key = next(iter(self.frame_dicts)) + indexes: list[str] = [ + x for x in self.frame_dicts[first_key].keys() if x not in self.orig_cols + ] + + if self.attr_cols: + self.attr_cols = indexes + self.attr_cols + + if self.elem_cols: + self.elem_cols = indexes + self.elem_cols + + def _get_prefix_uri(self) -> str: + """ + Get uri of namespace prefix. + + This method retrieves corresponding URI to prefix in namespaces. + + Raises + ------ + KeyError + *If prefix is not included in namespace dict. + """ + + raise AbstractMethodError(self) + + @final + def _other_namespaces(self) -> dict: + """ + Define other namespaces. + + This method will build dictionary of namespaces attributes + for root element, conditionally with optional namespaces and + prefix. + """ + + nmsp_dict: dict[str, str] = {} + if self.namespaces: + nmsp_dict = { + f"xmlns{p if p=='' else f':{p}'}": n + for p, n in self.namespaces.items() + if n != self.prefix_uri[1:-1] + } + + return nmsp_dict + + @final + def _build_attribs(self, d: dict[str, Any], elem_row: Any) -> Any: + """ + Create attributes of row. + + This method adds attributes using attr_cols to row element and + works with tuples for multindex or hierarchical columns. + """ + + if not self.attr_cols: + return elem_row + + for col in self.attr_cols: + attr_name = self._get_flat_col_name(col) + try: + if not isna(d[col]): + elem_row.attrib[attr_name] = str(d[col]) + except KeyError: + raise KeyError(f"no valid column, {col}") + return elem_row + + @final + def _get_flat_col_name(self, col: str | tuple) -> str: + flat_col = col + if isinstance(col, tuple): + flat_col = ( + "".join([str(c) for c in col]).strip() + if "" in col + else "_".join([str(c) for c in col]).strip() + ) + return f"{self.prefix_uri}{flat_col}" + + @cache_readonly + def _sub_element_cls(self): + raise AbstractMethodError(self) + + @final + def _build_elems(self, d: dict[str, Any], elem_row: Any) -> None: + """ + Create child elements of row. + + This method adds child elements using elem_cols to row element and + works with tuples for multindex or hierarchical columns. + """ + sub_element_cls = self._sub_element_cls + + if not self.elem_cols: + return + + for col in self.elem_cols: + elem_name = self._get_flat_col_name(col) + try: + val = None if isna(d[col]) or d[col] == "" else str(d[col]) + sub_element_cls(elem_row, elem_name).text = val + except KeyError: + raise KeyError(f"no valid column, {col}") + + @final + def write_output(self) -> str | None: + xml_doc = self._build_tree() + + if self.path_or_buffer is not None: + with get_handle( + self.path_or_buffer, + "wb", + compression=self.compression, + storage_options=self.storage_options, + is_text=False, + ) as handles: + handles.handle.write(xml_doc) + return None + + else: + return xml_doc.decode(self.encoding).rstrip() + + +class EtreeXMLFormatter(_BaseXMLFormatter): + """ + Class for formatting data in xml using Python standard library + modules: `xml.etree.ElementTree` and `xml.dom.minidom`. + """ + + def _build_tree(self) -> bytes: + from xml.etree.ElementTree import ( + Element, + SubElement, + tostring, + ) + + self.root = Element( + f"{self.prefix_uri}{self.root_name}", attrib=self._other_namespaces() + ) + + for d in self.frame_dicts.values(): + elem_row = SubElement(self.root, f"{self.prefix_uri}{self.row_name}") + + if not self.attr_cols and not self.elem_cols: + self.elem_cols = list(d.keys()) + self._build_elems(d, elem_row) + + else: + elem_row = self._build_attribs(d, elem_row) + self._build_elems(d, elem_row) + + self.out_xml = tostring( + self.root, + method="xml", + encoding=self.encoding, + xml_declaration=self.xml_declaration, + ) + + if self.pretty_print: + self.out_xml = self._prettify_tree() + + if self.stylesheet is not None: + raise ValueError( + "To use stylesheet, you need lxml installed and selected as parser." + ) + + return self.out_xml + + def _get_prefix_uri(self) -> str: + from xml.etree.ElementTree import register_namespace + + uri = "" + if self.namespaces: + for p, n in self.namespaces.items(): + if isinstance(p, str) and isinstance(n, str): + register_namespace(p, n) + if self.prefix: + try: + uri = f"{{{self.namespaces[self.prefix]}}}" + except KeyError: + raise KeyError(f"{self.prefix} is not included in namespaces") + elif "" in self.namespaces: + uri = f'{{{self.namespaces[""]}}}' + else: + uri = "" + + return uri + + @cache_readonly + def _sub_element_cls(self): + from xml.etree.ElementTree import SubElement + + return SubElement + + def _prettify_tree(self) -> bytes: + """ + Output tree for pretty print format. + + This method will pretty print xml with line breaks and indentation. + """ + + from xml.dom.minidom import parseString + + dom = parseString(self.out_xml) + + return dom.toprettyxml(indent=" ", encoding=self.encoding) + + +class LxmlXMLFormatter(_BaseXMLFormatter): + """ + Class for formatting data in xml using Python standard library + modules: `xml.etree.ElementTree` and `xml.dom.minidom`. + """ + + def __init__(self, *args, **kwargs) -> None: + super().__init__(*args, **kwargs) + + self._convert_empty_str_key() + + def _build_tree(self) -> bytes: + """ + Build tree from data. + + This method initializes the root and builds attributes and elements + with optional namespaces. + """ + from lxml.etree import ( + Element, + SubElement, + tostring, + ) + + self.root = Element(f"{self.prefix_uri}{self.root_name}", nsmap=self.namespaces) + + for d in self.frame_dicts.values(): + elem_row = SubElement(self.root, f"{self.prefix_uri}{self.row_name}") + + if not self.attr_cols and not self.elem_cols: + self.elem_cols = list(d.keys()) + self._build_elems(d, elem_row) + + else: + elem_row = self._build_attribs(d, elem_row) + self._build_elems(d, elem_row) + + self.out_xml = tostring( + self.root, + pretty_print=self.pretty_print, + method="xml", + encoding=self.encoding, + xml_declaration=self.xml_declaration, + ) + + if self.stylesheet is not None: + self.out_xml = self._transform_doc() + + return self.out_xml + + def _convert_empty_str_key(self) -> None: + """ + Replace zero-length string in `namespaces`. + + This method will replace '' with None to align to `lxml` + requirement that empty string prefixes are not allowed. + """ + + if self.namespaces and "" in self.namespaces.keys(): + self.namespaces[None] = self.namespaces.pop("", "default") + + def _get_prefix_uri(self) -> str: + uri = "" + if self.namespaces: + if self.prefix: + try: + uri = f"{{{self.namespaces[self.prefix]}}}" + except KeyError: + raise KeyError(f"{self.prefix} is not included in namespaces") + elif "" in self.namespaces: + uri = f'{{{self.namespaces[""]}}}' + else: + uri = "" + + return uri + + @cache_readonly + def _sub_element_cls(self): + from lxml.etree import SubElement + + return SubElement + + def _transform_doc(self) -> bytes: + """ + Parse stylesheet from file or buffer and run it. + + This method will parse stylesheet object into tree for parsing + conditionally by its specific object type, then transforms + original tree with XSLT script. + """ + from lxml.etree import ( + XSLT, + XMLParser, + fromstring, + parse, + ) + + style_doc = self.stylesheet + assert style_doc is not None # is ensured by caller + + handle_data = get_data_from_filepath( + filepath_or_buffer=style_doc, + encoding=self.encoding, + compression=self.compression, + storage_options=self.storage_options, + ) + + with preprocess_data(handle_data) as xml_data: + curr_parser = XMLParser(encoding=self.encoding) + + if isinstance(xml_data, io.StringIO): + xsl_doc = fromstring( + xml_data.getvalue().encode(self.encoding), parser=curr_parser + ) + else: + xsl_doc = parse(xml_data, parser=curr_parser) + + transformer = XSLT(xsl_doc) + new_doc = transformer(self.root) + + return bytes(new_doc) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/json/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/json/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..8f4e7a62834b57c151189cdd2994a55d1ad9f7de --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/json/__init__.py @@ -0,0 +1,15 @@ +from pandas.io.json._json import ( + read_json, + to_json, + ujson_dumps, + ujson_loads, +) +from pandas.io.json._table_schema import build_table_schema + +__all__ = [ + "ujson_dumps", + "ujson_loads", + "read_json", + "to_json", + "build_table_schema", +] diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/json/_json.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/json/_json.py new file mode 100644 index 0000000000000000000000000000000000000000..c0499ce750cf01e7c50a2a117652bae273c5251d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/json/_json.py @@ -0,0 +1,1494 @@ +from __future__ import annotations + +from abc import ( + ABC, + abstractmethod, +) +from collections import abc +from io import StringIO +from itertools import islice +from typing import ( + TYPE_CHECKING, + Any, + Callable, + Generic, + Literal, + TypeVar, + final, + overload, +) +import warnings + +import numpy as np + +from pandas._libs import lib +from pandas._libs.json import ( + ujson_dumps, + ujson_loads, +) +from pandas._libs.tslibs import iNaT +from pandas.compat._optional import import_optional_dependency +from pandas.errors import AbstractMethodError +from pandas.util._decorators import doc +from pandas.util._exceptions import find_stack_level +from pandas.util._validators import check_dtype_backend + +from pandas.core.dtypes.common import ( + ensure_str, + is_string_dtype, +) +from pandas.core.dtypes.dtypes import PeriodDtype + +from pandas import ( + DataFrame, + Index, + MultiIndex, + Series, + isna, + notna, + to_datetime, +) +from pandas.core.reshape.concat import concat +from pandas.core.shared_docs import _shared_docs + +from pandas.io._util import arrow_table_to_pandas +from pandas.io.common import ( + IOHandles, + dedup_names, + extension_to_compression, + file_exists, + get_handle, + is_fsspec_url, + is_potential_multi_index, + is_url, + stringify_path, +) +from pandas.io.json._normalize import convert_to_line_delimits +from pandas.io.json._table_schema import ( + build_table_schema, + parse_table_schema, +) +from pandas.io.parsers.readers import validate_integer + +if TYPE_CHECKING: + from collections.abc import ( + Hashable, + Mapping, + ) + from types import TracebackType + + from pandas._typing import ( + CompressionOptions, + DtypeArg, + DtypeBackend, + FilePath, + IndexLabel, + JSONEngine, + JSONSerializable, + ReadBuffer, + Self, + StorageOptions, + WriteBuffer, + ) + + from pandas.core.generic import NDFrame + +FrameSeriesStrT = TypeVar("FrameSeriesStrT", bound=Literal["frame", "series"]) + + +# interface to/from +@overload +def to_json( + path_or_buf: FilePath | WriteBuffer[str] | WriteBuffer[bytes], + obj: NDFrame, + orient: str | None = ..., + date_format: str = ..., + double_precision: int = ..., + force_ascii: bool = ..., + date_unit: str = ..., + default_handler: Callable[[Any], JSONSerializable] | None = ..., + lines: bool = ..., + compression: CompressionOptions = ..., + index: bool | None = ..., + indent: int = ..., + storage_options: StorageOptions = ..., + mode: Literal["a", "w"] = ..., +) -> None: + ... + + +@overload +def to_json( + path_or_buf: None, + obj: NDFrame, + orient: str | None = ..., + date_format: str = ..., + double_precision: int = ..., + force_ascii: bool = ..., + date_unit: str = ..., + default_handler: Callable[[Any], JSONSerializable] | None = ..., + lines: bool = ..., + compression: CompressionOptions = ..., + index: bool | None = ..., + indent: int = ..., + storage_options: StorageOptions = ..., + mode: Literal["a", "w"] = ..., +) -> str: + ... + + +def to_json( + path_or_buf: FilePath | WriteBuffer[str] | WriteBuffer[bytes] | None, + obj: NDFrame, + orient: str | None = None, + date_format: str = "epoch", + double_precision: int = 10, + force_ascii: bool = True, + date_unit: str = "ms", + default_handler: Callable[[Any], JSONSerializable] | None = None, + lines: bool = False, + compression: CompressionOptions = "infer", + index: bool | None = None, + indent: int = 0, + storage_options: StorageOptions | None = None, + mode: Literal["a", "w"] = "w", +) -> str | None: + if orient in ["records", "values"] and index is True: + raise ValueError( + "'index=True' is only valid when 'orient' is 'split', 'table', " + "'index', or 'columns'." + ) + elif orient in ["index", "columns"] and index is False: + raise ValueError( + "'index=False' is only valid when 'orient' is 'split', 'table', " + "'records', or 'values'." + ) + elif index is None: + # will be ignored for orient='records' and 'values' + index = True + + if lines and orient != "records": + raise ValueError("'lines' keyword only valid when 'orient' is records") + + if mode not in ["a", "w"]: + msg = ( + f"mode={mode} is not a valid option." + "Only 'w' and 'a' are currently supported." + ) + raise ValueError(msg) + + if mode == "a" and (not lines or orient != "records"): + msg = ( + "mode='a' (append) is only supported when " + "lines is True and orient is 'records'" + ) + raise ValueError(msg) + + if orient == "table" and isinstance(obj, Series): + obj = obj.to_frame(name=obj.name or "values") + + writer: type[Writer] + if orient == "table" and isinstance(obj, DataFrame): + writer = JSONTableWriter + elif isinstance(obj, Series): + writer = SeriesWriter + elif isinstance(obj, DataFrame): + writer = FrameWriter + else: + raise NotImplementedError("'obj' should be a Series or a DataFrame") + + s = writer( + obj, + orient=orient, + date_format=date_format, + double_precision=double_precision, + ensure_ascii=force_ascii, + date_unit=date_unit, + default_handler=default_handler, + index=index, + indent=indent, + ).write() + + if lines: + s = convert_to_line_delimits(s) + + if path_or_buf is not None: + # apply compression and byte/text conversion + with get_handle( + path_or_buf, mode, compression=compression, storage_options=storage_options + ) as handles: + handles.handle.write(s) + else: + return s + return None + + +class Writer(ABC): + _default_orient: str + + def __init__( + self, + obj: NDFrame, + orient: str | None, + date_format: str, + double_precision: int, + ensure_ascii: bool, + date_unit: str, + index: bool, + default_handler: Callable[[Any], JSONSerializable] | None = None, + indent: int = 0, + ) -> None: + self.obj = obj + + if orient is None: + orient = self._default_orient + + self.orient = orient + self.date_format = date_format + self.double_precision = double_precision + self.ensure_ascii = ensure_ascii + self.date_unit = date_unit + self.default_handler = default_handler + self.index = index + self.indent = indent + + self.is_copy = None + self._format_axes() + + def _format_axes(self) -> None: + raise AbstractMethodError(self) + + def write(self) -> str: + iso_dates = self.date_format == "iso" + return ujson_dumps( + self.obj_to_write, + orient=self.orient, + double_precision=self.double_precision, + ensure_ascii=self.ensure_ascii, + date_unit=self.date_unit, + iso_dates=iso_dates, + default_handler=self.default_handler, + indent=self.indent, + ) + + @property + @abstractmethod + def obj_to_write(self) -> NDFrame | Mapping[IndexLabel, Any]: + """Object to write in JSON format.""" + + +class SeriesWriter(Writer): + _default_orient = "index" + + @property + def obj_to_write(self) -> NDFrame | Mapping[IndexLabel, Any]: + if not self.index and self.orient == "split": + return {"name": self.obj.name, "data": self.obj.values} + else: + return self.obj + + def _format_axes(self) -> None: + if not self.obj.index.is_unique and self.orient == "index": + raise ValueError(f"Series index must be unique for orient='{self.orient}'") + + +class FrameWriter(Writer): + _default_orient = "columns" + + @property + def obj_to_write(self) -> NDFrame | Mapping[IndexLabel, Any]: + if not self.index and self.orient == "split": + obj_to_write = self.obj.to_dict(orient="split") + del obj_to_write["index"] + else: + obj_to_write = self.obj + return obj_to_write + + def _format_axes(self) -> None: + """ + Try to format axes if they are datelike. + """ + if not self.obj.index.is_unique and self.orient in ("index", "columns"): + raise ValueError( + f"DataFrame index must be unique for orient='{self.orient}'." + ) + if not self.obj.columns.is_unique and self.orient in ( + "index", + "columns", + "records", + ): + raise ValueError( + f"DataFrame columns must be unique for orient='{self.orient}'." + ) + + +class JSONTableWriter(FrameWriter): + _default_orient = "records" + + def __init__( + self, + obj, + orient: str | None, + date_format: str, + double_precision: int, + ensure_ascii: bool, + date_unit: str, + index: bool, + default_handler: Callable[[Any], JSONSerializable] | None = None, + indent: int = 0, + ) -> None: + """ + Adds a `schema` attribute with the Table Schema, resets + the index (can't do in caller, because the schema inference needs + to know what the index is, forces orient to records, and forces + date_format to 'iso'. + """ + super().__init__( + obj, + orient, + date_format, + double_precision, + ensure_ascii, + date_unit, + index, + default_handler=default_handler, + indent=indent, + ) + + if date_format != "iso": + msg = ( + "Trying to write with `orient='table'` and " + f"`date_format='{date_format}'`. Table Schema requires dates " + "to be formatted with `date_format='iso'`" + ) + raise ValueError(msg) + + self.schema = build_table_schema(obj, index=self.index) + + # NotImplemented on a column MultiIndex + if obj.ndim == 2 and isinstance(obj.columns, MultiIndex): + raise NotImplementedError( + "orient='table' is not supported for MultiIndex columns" + ) + + # TODO: Do this timedelta properly in objToJSON.c See GH #15137 + if ( + (obj.ndim == 1) + and (obj.name in set(obj.index.names)) + or len(obj.columns.intersection(obj.index.names)) + ): + msg = "Overlapping names between the index and columns" + raise ValueError(msg) + + obj = obj.copy() + timedeltas = obj.select_dtypes(include=["timedelta"]).columns + if len(timedeltas): + obj[timedeltas] = obj[timedeltas].map(lambda x: x.isoformat()) + # Convert PeriodIndex to datetimes before serializing + if isinstance(obj.index.dtype, PeriodDtype): + obj.index = obj.index.to_timestamp() + + # exclude index from obj if index=False + if not self.index: + self.obj = obj.reset_index(drop=True) + else: + self.obj = obj.reset_index(drop=False) + self.date_format = "iso" + self.orient = "records" + self.index = index + + @property + def obj_to_write(self) -> NDFrame | Mapping[IndexLabel, Any]: + return {"schema": self.schema, "data": self.obj} + + +@overload +def read_json( + path_or_buf: FilePath | ReadBuffer[str] | ReadBuffer[bytes], + *, + orient: str | None = ..., + typ: Literal["frame"] = ..., + dtype: DtypeArg | None = ..., + convert_axes: bool | None = ..., + convert_dates: bool | list[str] = ..., + keep_default_dates: bool = ..., + precise_float: bool = ..., + date_unit: str | None = ..., + encoding: str | None = ..., + encoding_errors: str | None = ..., + lines: bool = ..., + chunksize: int, + compression: CompressionOptions = ..., + nrows: int | None = ..., + storage_options: StorageOptions = ..., + dtype_backend: DtypeBackend | lib.NoDefault = ..., + engine: JSONEngine = ..., +) -> JsonReader[Literal["frame"]]: + ... + + +@overload +def read_json( + path_or_buf: FilePath | ReadBuffer[str] | ReadBuffer[bytes], + *, + orient: str | None = ..., + typ: Literal["series"], + dtype: DtypeArg | None = ..., + convert_axes: bool | None = ..., + convert_dates: bool | list[str] = ..., + keep_default_dates: bool = ..., + precise_float: bool = ..., + date_unit: str | None = ..., + encoding: str | None = ..., + encoding_errors: str | None = ..., + lines: bool = ..., + chunksize: int, + compression: CompressionOptions = ..., + nrows: int | None = ..., + storage_options: StorageOptions = ..., + dtype_backend: DtypeBackend | lib.NoDefault = ..., + engine: JSONEngine = ..., +) -> JsonReader[Literal["series"]]: + ... + + +@overload +def read_json( + path_or_buf: FilePath | ReadBuffer[str] | ReadBuffer[bytes], + *, + orient: str | None = ..., + typ: Literal["series"], + dtype: DtypeArg | None = ..., + convert_axes: bool | None = ..., + convert_dates: bool | list[str] = ..., + keep_default_dates: bool = ..., + precise_float: bool = ..., + date_unit: str | None = ..., + encoding: str | None = ..., + encoding_errors: str | None = ..., + lines: bool = ..., + chunksize: None = ..., + compression: CompressionOptions = ..., + nrows: int | None = ..., + storage_options: StorageOptions = ..., + dtype_backend: DtypeBackend | lib.NoDefault = ..., + engine: JSONEngine = ..., +) -> Series: + ... + + +@overload +def read_json( + path_or_buf: FilePath | ReadBuffer[str] | ReadBuffer[bytes], + *, + orient: str | None = ..., + typ: Literal["frame"] = ..., + dtype: DtypeArg | None = ..., + convert_axes: bool | None = ..., + convert_dates: bool | list[str] = ..., + keep_default_dates: bool = ..., + precise_float: bool = ..., + date_unit: str | None = ..., + encoding: str | None = ..., + encoding_errors: str | None = ..., + lines: bool = ..., + chunksize: None = ..., + compression: CompressionOptions = ..., + nrows: int | None = ..., + storage_options: StorageOptions = ..., + dtype_backend: DtypeBackend | lib.NoDefault = ..., + engine: JSONEngine = ..., +) -> DataFrame: + ... + + +@doc( + storage_options=_shared_docs["storage_options"], + decompression_options=_shared_docs["decompression_options"] % "path_or_buf", +) +def read_json( + path_or_buf: FilePath | ReadBuffer[str] | ReadBuffer[bytes], + *, + orient: str | None = None, + typ: Literal["frame", "series"] = "frame", + dtype: DtypeArg | None = None, + convert_axes: bool | None = None, + convert_dates: bool | list[str] = True, + keep_default_dates: bool = True, + precise_float: bool = False, + date_unit: str | None = None, + encoding: str | None = None, + encoding_errors: str | None = "strict", + lines: bool = False, + chunksize: int | None = None, + compression: CompressionOptions = "infer", + nrows: int | None = None, + storage_options: StorageOptions | None = None, + dtype_backend: DtypeBackend | lib.NoDefault = lib.no_default, + engine: JSONEngine = "ujson", +) -> DataFrame | Series | JsonReader: + """ + Convert a JSON string to pandas object. + + Parameters + ---------- + path_or_buf : a valid JSON str, path object or file-like object + Any valid string path is acceptable. The string could be a URL. Valid + URL schemes include http, ftp, s3, and file. For file URLs, a host is + expected. A local file could be: + ``file://localhost/path/to/table.json``. + + If you want to pass in a path object, pandas accepts any + ``os.PathLike``. + + By file-like object, we refer to objects with a ``read()`` method, + such as a file handle (e.g. via builtin ``open`` function) + or ``StringIO``. + + .. deprecated:: 2.1.0 + Passing json literal strings is deprecated. + + orient : str, optional + Indication of expected JSON string format. + Compatible JSON strings can be produced by ``to_json()`` with a + corresponding orient value. + The set of possible orients is: + + - ``'split'`` : dict like + ``{{index -> [index], columns -> [columns], data -> [values]}}`` + - ``'records'`` : list like + ``[{{column -> value}}, ... , {{column -> value}}]`` + - ``'index'`` : dict like ``{{index -> {{column -> value}}}}`` + - ``'columns'`` : dict like ``{{column -> {{index -> value}}}}`` + - ``'values'`` : just the values array + - ``'table'`` : dict like ``{{'schema': {{schema}}, 'data': {{data}}}}`` + + The allowed and default values depend on the value + of the `typ` parameter. + + * when ``typ == 'series'``, + + - allowed orients are ``{{'split','records','index'}}`` + - default is ``'index'`` + - The Series index must be unique for orient ``'index'``. + + * when ``typ == 'frame'``, + + - allowed orients are ``{{'split','records','index', + 'columns','values', 'table'}}`` + - default is ``'columns'`` + - The DataFrame index must be unique for orients ``'index'`` and + ``'columns'``. + - The DataFrame columns must be unique for orients ``'index'``, + ``'columns'``, and ``'records'``. + + typ : {{'frame', 'series'}}, default 'frame' + The type of object to recover. + + dtype : bool or dict, default None + If True, infer dtypes; if a dict of column to dtype, then use those; + if False, then don't infer dtypes at all, applies only to the data. + + For all ``orient`` values except ``'table'``, default is True. + + convert_axes : bool, default None + Try to convert the axes to the proper dtypes. + + For all ``orient`` values except ``'table'``, default is True. + + convert_dates : bool or list of str, default True + If True then default datelike columns may be converted (depending on + keep_default_dates). + If False, no dates will be converted. + If a list of column names, then those columns will be converted and + default datelike columns may also be converted (depending on + keep_default_dates). + + keep_default_dates : bool, default True + If parsing dates (convert_dates is not False), then try to parse the + default datelike columns. + A column label is datelike if + + * it ends with ``'_at'``, + + * it ends with ``'_time'``, + + * it begins with ``'timestamp'``, + + * it is ``'modified'``, or + + * it is ``'date'``. + + precise_float : bool, default False + Set to enable usage of higher precision (strtod) function when + decoding string to double values. Default (False) is to use fast but + less precise builtin functionality. + + date_unit : str, default None + The timestamp unit to detect if converting dates. The default behaviour + is to try and detect the correct precision, but if this is not desired + then pass one of 's', 'ms', 'us' or 'ns' to force parsing only seconds, + milliseconds, microseconds or nanoseconds respectively. + + encoding : str, default is 'utf-8' + The encoding to use to decode py3 bytes. + + encoding_errors : str, optional, default "strict" + How encoding errors are treated. `List of possible values + `_ . + + .. versionadded:: 1.3.0 + + lines : bool, default False + Read the file as a json object per line. + + chunksize : int, optional + Return JsonReader object for iteration. + See the `line-delimited json docs + `_ + for more information on ``chunksize``. + This can only be passed if `lines=True`. + If this is None, the file will be read into memory all at once. + {decompression_options} + + .. versionchanged:: 1.4.0 Zstandard support. + + nrows : int, optional + The number of lines from the line-delimited jsonfile that has to be read. + This can only be passed if `lines=True`. + If this is None, all the rows will be returned. + + {storage_options} + + dtype_backend : {{'numpy_nullable', 'pyarrow'}}, default 'numpy_nullable' + Back-end data type applied to the resultant :class:`DataFrame` + (still experimental). Behaviour is as follows: + + * ``"numpy_nullable"``: returns nullable-dtype-backed :class:`DataFrame` + (default). + * ``"pyarrow"``: returns pyarrow-backed nullable :class:`ArrowDtype` + DataFrame. + + .. versionadded:: 2.0 + + engine : {{"ujson", "pyarrow"}}, default "ujson" + Parser engine to use. The ``"pyarrow"`` engine is only available when + ``lines=True``. + + .. versionadded:: 2.0 + + Returns + ------- + Series, DataFrame, or pandas.api.typing.JsonReader + A JsonReader is returned when ``chunksize`` is not ``0`` or ``None``. + Otherwise, the type returned depends on the value of ``typ``. + + See Also + -------- + DataFrame.to_json : Convert a DataFrame to a JSON string. + Series.to_json : Convert a Series to a JSON string. + json_normalize : Normalize semi-structured JSON data into a flat table. + + Notes + ----- + Specific to ``orient='table'``, if a :class:`DataFrame` with a literal + :class:`Index` name of `index` gets written with :func:`to_json`, the + subsequent read operation will incorrectly set the :class:`Index` name to + ``None``. This is because `index` is also used by :func:`DataFrame.to_json` + to denote a missing :class:`Index` name, and the subsequent + :func:`read_json` operation cannot distinguish between the two. The same + limitation is encountered with a :class:`MultiIndex` and any names + beginning with ``'level_'``. + + Examples + -------- + >>> from io import StringIO + >>> df = pd.DataFrame([['a', 'b'], ['c', 'd']], + ... index=['row 1', 'row 2'], + ... columns=['col 1', 'col 2']) + + Encoding/decoding a Dataframe using ``'split'`` formatted JSON: + + >>> df.to_json(orient='split') + '\ +{{\ +"columns":["col 1","col 2"],\ +"index":["row 1","row 2"],\ +"data":[["a","b"],["c","d"]]\ +}}\ +' + >>> pd.read_json(StringIO(_), orient='split') + col 1 col 2 + row 1 a b + row 2 c d + + Encoding/decoding a Dataframe using ``'index'`` formatted JSON: + + >>> df.to_json(orient='index') + '{{"row 1":{{"col 1":"a","col 2":"b"}},"row 2":{{"col 1":"c","col 2":"d"}}}}' + + >>> pd.read_json(StringIO(_), orient='index') + col 1 col 2 + row 1 a b + row 2 c d + + Encoding/decoding a Dataframe using ``'records'`` formatted JSON. + Note that index labels are not preserved with this encoding. + + >>> df.to_json(orient='records') + '[{{"col 1":"a","col 2":"b"}},{{"col 1":"c","col 2":"d"}}]' + >>> pd.read_json(StringIO(_), orient='records') + col 1 col 2 + 0 a b + 1 c d + + Encoding with Table Schema + + >>> df.to_json(orient='table') + '\ +{{"schema":{{"fields":[\ +{{"name":"index","type":"string"}},\ +{{"name":"col 1","type":"string"}},\ +{{"name":"col 2","type":"string"}}],\ +"primaryKey":["index"],\ +"pandas_version":"1.4.0"}},\ +"data":[\ +{{"index":"row 1","col 1":"a","col 2":"b"}},\ +{{"index":"row 2","col 1":"c","col 2":"d"}}]\ +}}\ +' + + The following example uses ``dtype_backend="numpy_nullable"`` + + >>> data = '''{{"index": {{"0": 0, "1": 1}}, + ... "a": {{"0": 1, "1": null}}, + ... "b": {{"0": 2.5, "1": 4.5}}, + ... "c": {{"0": true, "1": false}}, + ... "d": {{"0": "a", "1": "b"}}, + ... "e": {{"0": 1577.2, "1": 1577.1}}}}''' + >>> pd.read_json(StringIO(data), dtype_backend="numpy_nullable") + index a b c d e + 0 0 1 2.5 True a 1577.2 + 1 1 4.5 False b 1577.1 + """ + if orient == "table" and dtype: + raise ValueError("cannot pass both dtype and orient='table'") + if orient == "table" and convert_axes: + raise ValueError("cannot pass both convert_axes and orient='table'") + + check_dtype_backend(dtype_backend) + + if dtype is None and orient != "table": + # error: Incompatible types in assignment (expression has type "bool", variable + # has type "Union[ExtensionDtype, str, dtype[Any], Type[str], Type[float], + # Type[int], Type[complex], Type[bool], Type[object], Dict[Hashable, + # Union[ExtensionDtype, Union[str, dtype[Any]], Type[str], Type[float], + # Type[int], Type[complex], Type[bool], Type[object]]], None]") + dtype = True # type: ignore[assignment] + if convert_axes is None and orient != "table": + convert_axes = True + + json_reader = JsonReader( + path_or_buf, + orient=orient, + typ=typ, + dtype=dtype, + convert_axes=convert_axes, + convert_dates=convert_dates, + keep_default_dates=keep_default_dates, + precise_float=precise_float, + date_unit=date_unit, + encoding=encoding, + lines=lines, + chunksize=chunksize, + compression=compression, + nrows=nrows, + storage_options=storage_options, + encoding_errors=encoding_errors, + dtype_backend=dtype_backend, + engine=engine, + ) + + if chunksize: + return json_reader + else: + return json_reader.read() + + +class JsonReader(abc.Iterator, Generic[FrameSeriesStrT]): + """ + JsonReader provides an interface for reading in a JSON file. + + If initialized with ``lines=True`` and ``chunksize``, can be iterated over + ``chunksize`` lines at a time. Otherwise, calling ``read`` reads in the + whole document. + """ + + def __init__( + self, + filepath_or_buffer, + orient, + typ: FrameSeriesStrT, + dtype, + convert_axes: bool | None, + convert_dates, + keep_default_dates: bool, + precise_float: bool, + date_unit, + encoding, + lines: bool, + chunksize: int | None, + compression: CompressionOptions, + nrows: int | None, + storage_options: StorageOptions | None = None, + encoding_errors: str | None = "strict", + dtype_backend: DtypeBackend | lib.NoDefault = lib.no_default, + engine: JSONEngine = "ujson", + ) -> None: + self.orient = orient + self.typ = typ + self.dtype = dtype + self.convert_axes = convert_axes + self.convert_dates = convert_dates + self.keep_default_dates = keep_default_dates + self.precise_float = precise_float + self.date_unit = date_unit + self.encoding = encoding + self.engine = engine + self.compression = compression + self.storage_options = storage_options + self.lines = lines + self.chunksize = chunksize + self.nrows_seen = 0 + self.nrows = nrows + self.encoding_errors = encoding_errors + self.handles: IOHandles[str] | None = None + self.dtype_backend = dtype_backend + + if self.engine not in {"pyarrow", "ujson"}: + raise ValueError( + f"The engine type {self.engine} is currently not supported." + ) + if self.chunksize is not None: + self.chunksize = validate_integer("chunksize", self.chunksize, 1) + if not self.lines: + raise ValueError("chunksize can only be passed if lines=True") + if self.engine == "pyarrow": + raise ValueError( + "currently pyarrow engine doesn't support chunksize parameter" + ) + if self.nrows is not None: + self.nrows = validate_integer("nrows", self.nrows, 0) + if not self.lines: + raise ValueError("nrows can only be passed if lines=True") + if ( + isinstance(filepath_or_buffer, str) + and not self.lines + and "\n" in filepath_or_buffer + ): + warnings.warn( + "Passing literal json to 'read_json' is deprecated and " + "will be removed in a future version. To read from a " + "literal string, wrap it in a 'StringIO' object.", + FutureWarning, + stacklevel=find_stack_level(), + ) + if self.engine == "pyarrow": + if not self.lines: + raise ValueError( + "currently pyarrow engine only supports " + "the line-delimited JSON format" + ) + self.data = filepath_or_buffer + elif self.engine == "ujson": + data = self._get_data_from_filepath(filepath_or_buffer) + self.data = self._preprocess_data(data) + + def _preprocess_data(self, data): + """ + At this point, the data either has a `read` attribute (e.g. a file + object or a StringIO) or is a string that is a JSON document. + + If self.chunksize, we prepare the data for the `__next__` method. + Otherwise, we read it into memory for the `read` method. + """ + if hasattr(data, "read") and not (self.chunksize or self.nrows): + with self: + data = data.read() + if not hasattr(data, "read") and (self.chunksize or self.nrows): + data = StringIO(data) + + return data + + def _get_data_from_filepath(self, filepath_or_buffer): + """ + The function read_json accepts three input types: + 1. filepath (string-like) + 2. file-like object (e.g. open file object, StringIO) + 3. JSON string + + This method turns (1) into (2) to simplify the rest of the processing. + It returns input types (2) and (3) unchanged. + + It raises FileNotFoundError if the input is a string ending in + one of .json, .json.gz, .json.bz2, etc. but no such file exists. + """ + # if it is a string but the file does not exist, it might be a JSON string + filepath_or_buffer = stringify_path(filepath_or_buffer) + if ( + not isinstance(filepath_or_buffer, str) + or is_url(filepath_or_buffer) + or is_fsspec_url(filepath_or_buffer) + or file_exists(filepath_or_buffer) + ): + self.handles = get_handle( + filepath_or_buffer, + "r", + encoding=self.encoding, + compression=self.compression, + storage_options=self.storage_options, + errors=self.encoding_errors, + ) + filepath_or_buffer = self.handles.handle + elif ( + isinstance(filepath_or_buffer, str) + and filepath_or_buffer.lower().endswith( + (".json",) + tuple(f".json{c}" for c in extension_to_compression) + ) + and not file_exists(filepath_or_buffer) + ): + raise FileNotFoundError(f"File {filepath_or_buffer} does not exist") + else: + warnings.warn( + "Passing literal json to 'read_json' is deprecated and " + "will be removed in a future version. To read from a " + "literal string, wrap it in a 'StringIO' object.", + FutureWarning, + stacklevel=find_stack_level(), + ) + return filepath_or_buffer + + def _combine_lines(self, lines) -> str: + """ + Combines a list of JSON objects into one JSON object. + """ + return ( + f'[{",".join([line for line in (line.strip() for line in lines) if line])}]' + ) + + @overload + def read(self: JsonReader[Literal["frame"]]) -> DataFrame: + ... + + @overload + def read(self: JsonReader[Literal["series"]]) -> Series: + ... + + @overload + def read(self: JsonReader[Literal["frame", "series"]]) -> DataFrame | Series: + ... + + def read(self) -> DataFrame | Series: + """ + Read the whole JSON input into a pandas object. + """ + obj: DataFrame | Series + with self: + if self.engine == "pyarrow": + pyarrow_json = import_optional_dependency("pyarrow.json") + pa_table = pyarrow_json.read_json(self.data) + return arrow_table_to_pandas(pa_table, dtype_backend=self.dtype_backend) + elif self.engine == "ujson": + if self.lines: + if self.chunksize: + obj = concat(self) + elif self.nrows: + lines = list(islice(self.data, self.nrows)) + lines_json = self._combine_lines(lines) + obj = self._get_object_parser(lines_json) + else: + data = ensure_str(self.data) + data_lines = data.split("\n") + obj = self._get_object_parser(self._combine_lines(data_lines)) + else: + obj = self._get_object_parser(self.data) + if self.dtype_backend is not lib.no_default: + return obj.convert_dtypes( + infer_objects=False, dtype_backend=self.dtype_backend + ) + else: + return obj + + def _get_object_parser(self, json) -> DataFrame | Series: + """ + Parses a json document into a pandas object. + """ + typ = self.typ + dtype = self.dtype + kwargs = { + "orient": self.orient, + "dtype": self.dtype, + "convert_axes": self.convert_axes, + "convert_dates": self.convert_dates, + "keep_default_dates": self.keep_default_dates, + "precise_float": self.precise_float, + "date_unit": self.date_unit, + "dtype_backend": self.dtype_backend, + } + obj = None + if typ == "frame": + obj = FrameParser(json, **kwargs).parse() + + if typ == "series" or obj is None: + if not isinstance(dtype, bool): + kwargs["dtype"] = dtype + obj = SeriesParser(json, **kwargs).parse() + + return obj + + def close(self) -> None: + """ + If we opened a stream earlier, in _get_data_from_filepath, we should + close it. + + If an open stream or file was passed, we leave it open. + """ + if self.handles is not None: + self.handles.close() + + def __iter__(self) -> Self: + return self + + @overload + def __next__(self: JsonReader[Literal["frame"]]) -> DataFrame: + ... + + @overload + def __next__(self: JsonReader[Literal["series"]]) -> Series: + ... + + @overload + def __next__(self: JsonReader[Literal["frame", "series"]]) -> DataFrame | Series: + ... + + def __next__(self) -> DataFrame | Series: + if self.nrows and self.nrows_seen >= self.nrows: + self.close() + raise StopIteration + + lines = list(islice(self.data, self.chunksize)) + if not lines: + self.close() + raise StopIteration + + try: + lines_json = self._combine_lines(lines) + obj = self._get_object_parser(lines_json) + + # Make sure that the returned objects have the right index. + obj.index = range(self.nrows_seen, self.nrows_seen + len(obj)) + self.nrows_seen += len(obj) + except Exception as ex: + self.close() + raise ex + + if self.dtype_backend is not lib.no_default: + return obj.convert_dtypes( + infer_objects=False, dtype_backend=self.dtype_backend + ) + else: + return obj + + def __enter__(self) -> Self: + return self + + def __exit__( + self, + exc_type: type[BaseException] | None, + exc_value: BaseException | None, + traceback: TracebackType | None, + ) -> None: + self.close() + + +class Parser: + _split_keys: tuple[str, ...] + _default_orient: str + + _STAMP_UNITS = ("s", "ms", "us", "ns") + _MIN_STAMPS = { + "s": 31536000, + "ms": 31536000000, + "us": 31536000000000, + "ns": 31536000000000000, + } + json: str + + def __init__( + self, + json: str, + orient, + dtype: DtypeArg | None = None, + convert_axes: bool = True, + convert_dates: bool | list[str] = True, + keep_default_dates: bool = False, + precise_float: bool = False, + date_unit=None, + dtype_backend: DtypeBackend | lib.NoDefault = lib.no_default, + ) -> None: + self.json = json + + if orient is None: + orient = self._default_orient + + self.orient = orient + + self.dtype = dtype + + if date_unit is not None: + date_unit = date_unit.lower() + if date_unit not in self._STAMP_UNITS: + raise ValueError(f"date_unit must be one of {self._STAMP_UNITS}") + self.min_stamp = self._MIN_STAMPS[date_unit] + else: + self.min_stamp = self._MIN_STAMPS["s"] + + self.precise_float = precise_float + self.convert_axes = convert_axes + self.convert_dates = convert_dates + self.date_unit = date_unit + self.keep_default_dates = keep_default_dates + self.obj: DataFrame | Series | None = None + self.dtype_backend = dtype_backend + + @final + def check_keys_split(self, decoded: dict) -> None: + """ + Checks that dict has only the appropriate keys for orient='split'. + """ + bad_keys = set(decoded.keys()).difference(set(self._split_keys)) + if bad_keys: + bad_keys_joined = ", ".join(bad_keys) + raise ValueError(f"JSON data had unexpected key(s): {bad_keys_joined}") + + @final + def parse(self): + self._parse() + + if self.obj is None: + return None + if self.convert_axes: + self._convert_axes() + self._try_convert_types() + return self.obj + + def _parse(self) -> None: + raise AbstractMethodError(self) + + @final + def _convert_axes(self) -> None: + """ + Try to convert axes. + """ + obj = self.obj + assert obj is not None # for mypy + for axis_name in obj._AXIS_ORDERS: + ax = obj._get_axis(axis_name) + ser = Series(ax, dtype=ax.dtype, copy=False) + new_ser, result = self._try_convert_data( + name=axis_name, + data=ser, + use_dtypes=False, + convert_dates=True, + is_axis=True, + ) + if result: + new_axis = Index(new_ser, dtype=new_ser.dtype, copy=False) + setattr(self.obj, axis_name, new_axis) + + def _try_convert_types(self) -> None: + raise AbstractMethodError(self) + + @final + def _try_convert_data( + self, + name: Hashable, + data: Series, + use_dtypes: bool = True, + convert_dates: bool | list[str] = True, + is_axis: bool = False, + ) -> tuple[Series, bool]: + """ + Try to parse a Series into a column by inferring dtype. + """ + # don't try to coerce, unless a force conversion + if use_dtypes: + if not self.dtype: + if all(notna(data)): + return data, False + + with warnings.catch_warnings(): + warnings.filterwarnings( + "ignore", + "Downcasting object dtype arrays", + category=FutureWarning, + ) + filled = data.fillna(np.nan) + + return filled, True + + elif self.dtype is True: + pass + else: + # dtype to force + dtype = ( + self.dtype.get(name) if isinstance(self.dtype, dict) else self.dtype + ) + if dtype is not None: + try: + return data.astype(dtype), True + except (TypeError, ValueError): + return data, False + + if convert_dates: + new_data, result = self._try_convert_to_date(data) + if result: + return new_data, True + + converted = False + if self.dtype_backend is not lib.no_default and not is_axis: + # Fall through for conversion later on + return data, True + elif is_string_dtype(data.dtype): + # try float + try: + data = data.astype("float64") + converted = True + except (TypeError, ValueError): + pass + + if data.dtype.kind == "f" and data.dtype != "float64": + # coerce floats to 64 + try: + data = data.astype("float64") + converted = True + except (TypeError, ValueError): + pass + + # don't coerce 0-len data + if len(data) and data.dtype in ("float", "object"): + # coerce ints if we can + try: + new_data = data.astype("int64") + if (new_data == data).all(): + data = new_data + converted = True + except (TypeError, ValueError, OverflowError): + pass + + if data.dtype == "int" and data.dtype != "int64": + # coerce ints to 64 + try: + data = data.astype("int64") + converted = True + except (TypeError, ValueError): + pass + + # if we have an index, we want to preserve dtypes + if name == "index" and len(data): + if self.orient == "split": + return data, False + + return data, converted + + @final + def _try_convert_to_date(self, data: Series) -> tuple[Series, bool]: + """ + Try to parse a ndarray like into a date column. + + Try to coerce object in epoch/iso formats and integer/float in epoch + formats. Return a boolean if parsing was successful. + """ + # no conversion on empty + if not len(data): + return data, False + + new_data = data + + if new_data.dtype == "string": + new_data = new_data.astype(object) + + if new_data.dtype == "object": + try: + new_data = data.astype("int64") + except OverflowError: + return data, False + except (TypeError, ValueError): + pass + + # ignore numbers that are out of range + if issubclass(new_data.dtype.type, np.number): + in_range = ( + isna(new_data._values) + | (new_data > self.min_stamp) + | (new_data._values == iNaT) + ) + if not in_range.all(): + return data, False + + date_units = (self.date_unit,) if self.date_unit else self._STAMP_UNITS + for date_unit in date_units: + try: + with warnings.catch_warnings(): + warnings.filterwarnings( + "ignore", + ".*parsing datetimes with mixed time " + "zones will raise an error", + category=FutureWarning, + ) + new_data = to_datetime(new_data, errors="raise", unit=date_unit) + except (ValueError, OverflowError, TypeError): + continue + return new_data, True + return data, False + + +class SeriesParser(Parser): + _default_orient = "index" + _split_keys = ("name", "index", "data") + obj: Series | None + + def _parse(self) -> None: + data = ujson_loads(self.json, precise_float=self.precise_float) + + if self.orient == "split": + decoded = {str(k): v for k, v in data.items()} + self.check_keys_split(decoded) + self.obj = Series(**decoded) + else: + self.obj = Series(data) + + def _try_convert_types(self) -> None: + if self.obj is None: + return + obj, result = self._try_convert_data( + "data", self.obj, convert_dates=self.convert_dates + ) + if result: + self.obj = obj + + +class FrameParser(Parser): + _default_orient = "columns" + _split_keys = ("columns", "index", "data") + obj: DataFrame | None + + def _parse(self) -> None: + json = self.json + orient = self.orient + + if orient == "columns": + self.obj = DataFrame( + ujson_loads(json, precise_float=self.precise_float), dtype=None + ) + elif orient == "split": + decoded = { + str(k): v + for k, v in ujson_loads(json, precise_float=self.precise_float).items() + } + self.check_keys_split(decoded) + orig_names = [ + (tuple(col) if isinstance(col, list) else col) + for col in decoded["columns"] + ] + decoded["columns"] = dedup_names( + orig_names, + is_potential_multi_index(orig_names, None), + ) + self.obj = DataFrame(dtype=None, **decoded) + elif orient == "index": + self.obj = DataFrame.from_dict( + ujson_loads(json, precise_float=self.precise_float), + dtype=None, + orient="index", + ) + elif orient == "table": + self.obj = parse_table_schema(json, precise_float=self.precise_float) + else: + self.obj = DataFrame( + ujson_loads(json, precise_float=self.precise_float), dtype=None + ) + + def _process_converter( + self, + f: Callable[[Hashable, Series], tuple[Series, bool]], + filt: Callable[[Hashable], bool] | None = None, + ) -> None: + """ + Take a conversion function and possibly recreate the frame. + """ + if filt is None: + filt = lambda col: True + + obj = self.obj + assert obj is not None # for mypy + + needs_new_obj = False + new_obj = {} + for i, (col, c) in enumerate(obj.items()): + if filt(col): + new_data, result = f(col, c) + if result: + c = new_data + needs_new_obj = True + new_obj[i] = c + + if needs_new_obj: + # possibly handle dup columns + new_frame = DataFrame(new_obj, index=obj.index) + new_frame.columns = obj.columns + self.obj = new_frame + + def _try_convert_types(self) -> None: + if self.obj is None: + return + if self.convert_dates: + self._try_convert_dates() + + self._process_converter( + lambda col, c: self._try_convert_data(col, c, convert_dates=False) + ) + + def _try_convert_dates(self) -> None: + if self.obj is None: + return + + # our columns to parse + convert_dates_list_bool = self.convert_dates + if isinstance(convert_dates_list_bool, bool): + convert_dates_list_bool = [] + convert_dates = set(convert_dates_list_bool) + + def is_ok(col) -> bool: + """ + Return if this col is ok to try for a date parse. + """ + if col in convert_dates: + return True + if not self.keep_default_dates: + return False + if not isinstance(col, str): + return False + + col_lower = col.lower() + if ( + col_lower.endswith(("_at", "_time")) + or col_lower == "modified" + or col_lower == "date" + or col_lower == "datetime" + or col_lower.startswith("timestamp") + ): + return True + return False + + self._process_converter(lambda col, c: self._try_convert_to_date(c), filt=is_ok) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/json/_normalize.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/json/_normalize.py new file mode 100644 index 0000000000000000000000000000000000000000..b1e2210f9d8940a0931b07e1631350089140ff95 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/json/_normalize.py @@ -0,0 +1,544 @@ +# --------------------------------------------------------------------- +# JSON normalization routines +from __future__ import annotations + +from collections import ( + abc, + defaultdict, +) +import copy +from typing import ( + TYPE_CHECKING, + Any, + DefaultDict, +) + +import numpy as np + +from pandas._libs.writers import convert_json_to_lines + +import pandas as pd +from pandas import DataFrame + +if TYPE_CHECKING: + from collections.abc import Iterable + + from pandas._typing import ( + IgnoreRaise, + Scalar, + ) + + +def convert_to_line_delimits(s: str) -> str: + """ + Helper function that converts JSON lists to line delimited JSON. + """ + # Determine we have a JSON list to turn to lines otherwise just return the + # json object, only lists can + if not s[0] == "[" and s[-1] == "]": + return s + s = s[1:-1] + + return convert_json_to_lines(s) + + +def nested_to_record( + ds, + prefix: str = "", + sep: str = ".", + level: int = 0, + max_level: int | None = None, +): + """ + A simplified json_normalize + + Converts a nested dict into a flat dict ("record"), unlike json_normalize, + it does not attempt to extract a subset of the data. + + Parameters + ---------- + ds : dict or list of dicts + prefix: the prefix, optional, default: "" + sep : str, default '.' + Nested records will generate names separated by sep, + e.g., for sep='.', { 'foo' : { 'bar' : 0 } } -> foo.bar + level: int, optional, default: 0 + The number of levels in the json string. + + max_level: int, optional, default: None + The max depth to normalize. + + Returns + ------- + d - dict or list of dicts, matching `ds` + + Examples + -------- + >>> nested_to_record( + ... dict(flat1=1, dict1=dict(c=1, d=2), nested=dict(e=dict(c=1, d=2), d=2)) + ... ) + {\ +'flat1': 1, \ +'dict1.c': 1, \ +'dict1.d': 2, \ +'nested.e.c': 1, \ +'nested.e.d': 2, \ +'nested.d': 2\ +} + """ + singleton = False + if isinstance(ds, dict): + ds = [ds] + singleton = True + new_ds = [] + for d in ds: + new_d = copy.deepcopy(d) + for k, v in d.items(): + # each key gets renamed with prefix + if not isinstance(k, str): + k = str(k) + if level == 0: + newkey = k + else: + newkey = prefix + sep + k + + # flatten if type is dict and + # current dict level < maximum level provided and + # only dicts gets recurse-flattened + # only at level>1 do we rename the rest of the keys + if not isinstance(v, dict) or ( + max_level is not None and level >= max_level + ): + if level != 0: # so we skip copying for top level, common case + v = new_d.pop(k) + new_d[newkey] = v + continue + + v = new_d.pop(k) + new_d.update(nested_to_record(v, newkey, sep, level + 1, max_level)) + new_ds.append(new_d) + + if singleton: + return new_ds[0] + return new_ds + + +def _normalise_json( + data: Any, + key_string: str, + normalized_dict: dict[str, Any], + separator: str, +) -> dict[str, Any]: + """ + Main recursive function + Designed for the most basic use case of pd.json_normalize(data) + intended as a performance improvement, see #15621 + + Parameters + ---------- + data : Any + Type dependent on types contained within nested Json + key_string : str + New key (with separator(s) in) for data + normalized_dict : dict + The new normalized/flattened Json dict + separator : str, default '.' + Nested records will generate names separated by sep, + e.g., for sep='.', { 'foo' : { 'bar' : 0 } } -> foo.bar + """ + if isinstance(data, dict): + for key, value in data.items(): + new_key = f"{key_string}{separator}{key}" + + if not key_string: + new_key = new_key.removeprefix(separator) + + _normalise_json( + data=value, + key_string=new_key, + normalized_dict=normalized_dict, + separator=separator, + ) + else: + normalized_dict[key_string] = data + return normalized_dict + + +def _normalise_json_ordered(data: dict[str, Any], separator: str) -> dict[str, Any]: + """ + Order the top level keys and then recursively go to depth + + Parameters + ---------- + data : dict or list of dicts + separator : str, default '.' + Nested records will generate names separated by sep, + e.g., for sep='.', { 'foo' : { 'bar' : 0 } } -> foo.bar + + Returns + ------- + dict or list of dicts, matching `normalised_json_object` + """ + top_dict_ = {k: v for k, v in data.items() if not isinstance(v, dict)} + nested_dict_ = _normalise_json( + data={k: v for k, v in data.items() if isinstance(v, dict)}, + key_string="", + normalized_dict={}, + separator=separator, + ) + return {**top_dict_, **nested_dict_} + + +def _simple_json_normalize( + ds: dict | list[dict], + sep: str = ".", +) -> dict | list[dict] | Any: + """ + A optimized basic json_normalize + + Converts a nested dict into a flat dict ("record"), unlike + json_normalize and nested_to_record it doesn't do anything clever. + But for the most basic use cases it enhances performance. + E.g. pd.json_normalize(data) + + Parameters + ---------- + ds : dict or list of dicts + sep : str, default '.' + Nested records will generate names separated by sep, + e.g., for sep='.', { 'foo' : { 'bar' : 0 } } -> foo.bar + + Returns + ------- + frame : DataFrame + d - dict or list of dicts, matching `normalised_json_object` + + Examples + -------- + >>> _simple_json_normalize( + ... { + ... "flat1": 1, + ... "dict1": {"c": 1, "d": 2}, + ... "nested": {"e": {"c": 1, "d": 2}, "d": 2}, + ... } + ... ) + {\ +'flat1': 1, \ +'dict1.c': 1, \ +'dict1.d': 2, \ +'nested.e.c': 1, \ +'nested.e.d': 2, \ +'nested.d': 2\ +} + + """ + normalised_json_object = {} + # expect a dictionary, as most jsons are. However, lists are perfectly valid + if isinstance(ds, dict): + normalised_json_object = _normalise_json_ordered(data=ds, separator=sep) + elif isinstance(ds, list): + normalised_json_list = [_simple_json_normalize(row, sep=sep) for row in ds] + return normalised_json_list + return normalised_json_object + + +def json_normalize( + data: dict | list[dict], + record_path: str | list | None = None, + meta: str | list[str | list[str]] | None = None, + meta_prefix: str | None = None, + record_prefix: str | None = None, + errors: IgnoreRaise = "raise", + sep: str = ".", + max_level: int | None = None, +) -> DataFrame: + """ + Normalize semi-structured JSON data into a flat table. + + Parameters + ---------- + data : dict or list of dicts + Unserialized JSON objects. + record_path : str or list of str, default None + Path in each object to list of records. If not passed, data will be + assumed to be an array of records. + meta : list of paths (str or list of str), default None + Fields to use as metadata for each record in resulting table. + meta_prefix : str, default None + If True, prefix records with dotted (?) path, e.g. foo.bar.field if + meta is ['foo', 'bar']. + record_prefix : str, default None + If True, prefix records with dotted (?) path, e.g. foo.bar.field if + path to records is ['foo', 'bar']. + errors : {'raise', 'ignore'}, default 'raise' + Configures error handling. + + * 'ignore' : will ignore KeyError if keys listed in meta are not + always present. + * 'raise' : will raise KeyError if keys listed in meta are not + always present. + sep : str, default '.' + Nested records will generate names separated by sep. + e.g., for sep='.', {'foo': {'bar': 0}} -> foo.bar. + max_level : int, default None + Max number of levels(depth of dict) to normalize. + if None, normalizes all levels. + + Returns + ------- + frame : DataFrame + Normalize semi-structured JSON data into a flat table. + + Examples + -------- + >>> data = [ + ... {"id": 1, "name": {"first": "Coleen", "last": "Volk"}}, + ... {"name": {"given": "Mark", "family": "Regner"}}, + ... {"id": 2, "name": "Faye Raker"}, + ... ] + >>> pd.json_normalize(data) + id name.first name.last name.given name.family name + 0 1.0 Coleen Volk NaN NaN NaN + 1 NaN NaN NaN Mark Regner NaN + 2 2.0 NaN NaN NaN NaN Faye Raker + + >>> data = [ + ... { + ... "id": 1, + ... "name": "Cole Volk", + ... "fitness": {"height": 130, "weight": 60}, + ... }, + ... {"name": "Mark Reg", "fitness": {"height": 130, "weight": 60}}, + ... { + ... "id": 2, + ... "name": "Faye Raker", + ... "fitness": {"height": 130, "weight": 60}, + ... }, + ... ] + >>> pd.json_normalize(data, max_level=0) + id name fitness + 0 1.0 Cole Volk {'height': 130, 'weight': 60} + 1 NaN Mark Reg {'height': 130, 'weight': 60} + 2 2.0 Faye Raker {'height': 130, 'weight': 60} + + Normalizes nested data up to level 1. + + >>> data = [ + ... { + ... "id": 1, + ... "name": "Cole Volk", + ... "fitness": {"height": 130, "weight": 60}, + ... }, + ... {"name": "Mark Reg", "fitness": {"height": 130, "weight": 60}}, + ... { + ... "id": 2, + ... "name": "Faye Raker", + ... "fitness": {"height": 130, "weight": 60}, + ... }, + ... ] + >>> pd.json_normalize(data, max_level=1) + id name fitness.height fitness.weight + 0 1.0 Cole Volk 130 60 + 1 NaN Mark Reg 130 60 + 2 2.0 Faye Raker 130 60 + + >>> data = [ + ... { + ... "state": "Florida", + ... "shortname": "FL", + ... "info": {"governor": "Rick Scott"}, + ... "counties": [ + ... {"name": "Dade", "population": 12345}, + ... {"name": "Broward", "population": 40000}, + ... {"name": "Palm Beach", "population": 60000}, + ... ], + ... }, + ... { + ... "state": "Ohio", + ... "shortname": "OH", + ... "info": {"governor": "John Kasich"}, + ... "counties": [ + ... {"name": "Summit", "population": 1234}, + ... {"name": "Cuyahoga", "population": 1337}, + ... ], + ... }, + ... ] + >>> result = pd.json_normalize( + ... data, "counties", ["state", "shortname", ["info", "governor"]] + ... ) + >>> result + name population state shortname info.governor + 0 Dade 12345 Florida FL Rick Scott + 1 Broward 40000 Florida FL Rick Scott + 2 Palm Beach 60000 Florida FL Rick Scott + 3 Summit 1234 Ohio OH John Kasich + 4 Cuyahoga 1337 Ohio OH John Kasich + + >>> data = {"A": [1, 2]} + >>> pd.json_normalize(data, "A", record_prefix="Prefix.") + Prefix.0 + 0 1 + 1 2 + + Returns normalized data with columns prefixed with the given string. + """ + + def _pull_field( + js: dict[str, Any], spec: list | str, extract_record: bool = False + ) -> Scalar | Iterable: + """Internal function to pull field""" + result = js + try: + if isinstance(spec, list): + for field in spec: + if result is None: + raise KeyError(field) + result = result[field] + else: + result = result[spec] + except KeyError as e: + if extract_record: + raise KeyError( + f"Key {e} not found. If specifying a record_path, all elements of " + f"data should have the path." + ) from e + if errors == "ignore": + return np.nan + else: + raise KeyError( + f"Key {e} not found. To replace missing values of {e} with " + f"np.nan, pass in errors='ignore'" + ) from e + + return result + + def _pull_records(js: dict[str, Any], spec: list | str) -> list: + """ + Internal function to pull field for records, and similar to + _pull_field, but require to return list. And will raise error + if has non iterable value. + """ + result = _pull_field(js, spec, extract_record=True) + + # GH 31507 GH 30145, GH 26284 if result is not list, raise TypeError if not + # null, otherwise return an empty list + if not isinstance(result, list): + if pd.isnull(result): + result = [] + else: + raise TypeError( + f"{js} has non list value {result} for path {spec}. " + "Must be list or null." + ) + return result + + if isinstance(data, list) and not data: + return DataFrame() + elif isinstance(data, dict): + # A bit of a hackjob + data = [data] + elif isinstance(data, abc.Iterable) and not isinstance(data, str): + # GH35923 Fix pd.json_normalize to not skip the first element of a + # generator input + data = list(data) + else: + raise NotImplementedError + + # check to see if a simple recursive function is possible to + # improve performance (see #15621) but only for cases such + # as pd.Dataframe(data) or pd.Dataframe(data, sep) + if ( + record_path is None + and meta is None + and meta_prefix is None + and record_prefix is None + and max_level is None + ): + return DataFrame(_simple_json_normalize(data, sep=sep)) + + if record_path is None: + if any([isinstance(x, dict) for x in y.values()] for y in data): + # naive normalization, this is idempotent for flat records + # and potentially will inflate the data considerably for + # deeply nested structures: + # {VeryLong: { b: 1,c:2}} -> {VeryLong.b:1 ,VeryLong.c:@} + # + # TODO: handle record value which are lists, at least error + # reasonably + data = nested_to_record(data, sep=sep, max_level=max_level) + return DataFrame(data) + elif not isinstance(record_path, list): + record_path = [record_path] + + if meta is None: + meta = [] + elif not isinstance(meta, list): + meta = [meta] + + _meta = [m if isinstance(m, list) else [m] for m in meta] + + # Disastrously inefficient for now + records: list = [] + lengths = [] + + meta_vals: DefaultDict = defaultdict(list) + meta_keys = [sep.join(val) for val in _meta] + + def _recursive_extract(data, path, seen_meta, level: int = 0) -> None: + if isinstance(data, dict): + data = [data] + if len(path) > 1: + for obj in data: + for val, key in zip(_meta, meta_keys): + if level + 1 == len(val): + seen_meta[key] = _pull_field(obj, val[-1]) + + _recursive_extract(obj[path[0]], path[1:], seen_meta, level=level + 1) + else: + for obj in data: + recs = _pull_records(obj, path[0]) + recs = [ + nested_to_record(r, sep=sep, max_level=max_level) + if isinstance(r, dict) + else r + for r in recs + ] + + # For repeating the metadata later + lengths.append(len(recs)) + for val, key in zip(_meta, meta_keys): + if level + 1 > len(val): + meta_val = seen_meta[key] + else: + meta_val = _pull_field(obj, val[level:]) + meta_vals[key].append(meta_val) + records.extend(recs) + + _recursive_extract(data, record_path, {}, level=0) + + result = DataFrame(records) + + if record_prefix is not None: + result = result.rename(columns=lambda x: f"{record_prefix}{x}") + + # Data types, a problem + for k, v in meta_vals.items(): + if meta_prefix is not None: + k = meta_prefix + k + + if k in result: + raise ValueError( + f"Conflicting metadata name {k}, need distinguishing prefix " + ) + # GH 37782 + + values = np.array(v, dtype=object) + + if values.ndim > 1: + # GH 37782 + values = np.empty((len(v),), dtype=object) + for i, v in enumerate(v): + values[i] = v + + result[k] = values.repeat(lengths) + return result diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/json/_table_schema.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/json/_table_schema.py new file mode 100644 index 0000000000000000000000000000000000000000..c72411d87eabfe2838061a0a99d1e9de9aeed8a5 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/json/_table_schema.py @@ -0,0 +1,387 @@ +""" +Table Schema builders + +https://specs.frictionlessdata.io/table-schema/ +""" +from __future__ import annotations + +from typing import ( + TYPE_CHECKING, + Any, + cast, +) +import warnings + +from pandas._libs import lib +from pandas._libs.json import ujson_loads +from pandas._libs.tslibs import timezones +from pandas._libs.tslibs.dtypes import freq_to_period_freqstr +from pandas.util._exceptions import find_stack_level + +from pandas.core.dtypes.base import _registry as registry +from pandas.core.dtypes.common import ( + is_bool_dtype, + is_integer_dtype, + is_numeric_dtype, + is_string_dtype, +) +from pandas.core.dtypes.dtypes import ( + CategoricalDtype, + DatetimeTZDtype, + ExtensionDtype, + PeriodDtype, +) + +from pandas import DataFrame +import pandas.core.common as com + +from pandas.tseries.frequencies import to_offset + +if TYPE_CHECKING: + from pandas._typing import ( + DtypeObj, + JSONSerializable, + ) + + from pandas import Series + from pandas.core.indexes.multi import MultiIndex + + +TABLE_SCHEMA_VERSION = "1.4.0" + + +def as_json_table_type(x: DtypeObj) -> str: + """ + Convert a NumPy / pandas type to its corresponding json_table. + + Parameters + ---------- + x : np.dtype or ExtensionDtype + + Returns + ------- + str + the Table Schema data types + + Notes + ----- + This table shows the relationship between NumPy / pandas dtypes, + and Table Schema dtypes. + + ============== ================= + Pandas type Table Schema type + ============== ================= + int64 integer + float64 number + bool boolean + datetime64[ns] datetime + timedelta64[ns] duration + object str + categorical any + =============== ================= + """ + if is_integer_dtype(x): + return "integer" + elif is_bool_dtype(x): + return "boolean" + elif is_numeric_dtype(x): + return "number" + elif lib.is_np_dtype(x, "M") or isinstance(x, (DatetimeTZDtype, PeriodDtype)): + return "datetime" + elif lib.is_np_dtype(x, "m"): + return "duration" + elif is_string_dtype(x): + return "string" + else: + return "any" + + +def set_default_names(data): + """Sets index names to 'index' for regular, or 'level_x' for Multi""" + if com.all_not_none(*data.index.names): + nms = data.index.names + if len(nms) == 1 and data.index.name == "index": + warnings.warn( + "Index name of 'index' is not round-trippable.", + stacklevel=find_stack_level(), + ) + elif len(nms) > 1 and any(x.startswith("level_") for x in nms): + warnings.warn( + "Index names beginning with 'level_' are not round-trippable.", + stacklevel=find_stack_level(), + ) + return data + + data = data.copy() + if data.index.nlevels > 1: + data.index.names = com.fill_missing_names(data.index.names) + else: + data.index.name = data.index.name or "index" + return data + + +def convert_pandas_type_to_json_field(arr) -> dict[str, JSONSerializable]: + dtype = arr.dtype + name: JSONSerializable + if arr.name is None: + name = "values" + else: + name = arr.name + field: dict[str, JSONSerializable] = { + "name": name, + "type": as_json_table_type(dtype), + } + + if isinstance(dtype, CategoricalDtype): + cats = dtype.categories + ordered = dtype.ordered + + field["constraints"] = {"enum": list(cats)} + field["ordered"] = ordered + elif isinstance(dtype, PeriodDtype): + field["freq"] = dtype.freq.freqstr + elif isinstance(dtype, DatetimeTZDtype): + if timezones.is_utc(dtype.tz): + # timezone.utc has no "zone" attr + field["tz"] = "UTC" + else: + # error: "tzinfo" has no attribute "zone" + field["tz"] = dtype.tz.zone # type: ignore[attr-defined] + elif isinstance(dtype, ExtensionDtype): + field["extDtype"] = dtype.name + return field + + +def convert_json_field_to_pandas_type(field) -> str | CategoricalDtype: + """ + Converts a JSON field descriptor into its corresponding NumPy / pandas type + + Parameters + ---------- + field + A JSON field descriptor + + Returns + ------- + dtype + + Raises + ------ + ValueError + If the type of the provided field is unknown or currently unsupported + + Examples + -------- + >>> convert_json_field_to_pandas_type({"name": "an_int", "type": "integer"}) + 'int64' + + >>> convert_json_field_to_pandas_type( + ... { + ... "name": "a_categorical", + ... "type": "any", + ... "constraints": {"enum": ["a", "b", "c"]}, + ... "ordered": True, + ... } + ... ) + CategoricalDtype(categories=['a', 'b', 'c'], ordered=True, categories_dtype=object) + + >>> convert_json_field_to_pandas_type({"name": "a_datetime", "type": "datetime"}) + 'datetime64[ns]' + + >>> convert_json_field_to_pandas_type( + ... {"name": "a_datetime_with_tz", "type": "datetime", "tz": "US/Central"} + ... ) + 'datetime64[ns, US/Central]' + """ + typ = field["type"] + if typ == "string": + return field.get("extDtype", None) + elif typ == "integer": + return field.get("extDtype", "int64") + elif typ == "number": + return field.get("extDtype", "float64") + elif typ == "boolean": + return field.get("extDtype", "bool") + elif typ == "duration": + return "timedelta64" + elif typ == "datetime": + if field.get("tz"): + return f"datetime64[ns, {field['tz']}]" + elif field.get("freq"): + # GH#9586 rename frequency M to ME for offsets + offset = to_offset(field["freq"]) + freq_n, freq_name = offset.n, offset.name + freq = freq_to_period_freqstr(freq_n, freq_name) + # GH#47747 using datetime over period to minimize the change surface + return f"period[{freq}]" + else: + return "datetime64[ns]" + elif typ == "any": + if "constraints" in field and "ordered" in field: + return CategoricalDtype( + categories=field["constraints"]["enum"], ordered=field["ordered"] + ) + elif "extDtype" in field: + return registry.find(field["extDtype"]) + else: + return "object" + + raise ValueError(f"Unsupported or invalid field type: {typ}") + + +def build_table_schema( + data: DataFrame | Series, + index: bool = True, + primary_key: bool | None = None, + version: bool = True, +) -> dict[str, JSONSerializable]: + """ + Create a Table schema from ``data``. + + Parameters + ---------- + data : Series, DataFrame + index : bool, default True + Whether to include ``data.index`` in the schema. + primary_key : bool or None, default True + Column names to designate as the primary key. + The default `None` will set `'primaryKey'` to the index + level or levels if the index is unique. + version : bool, default True + Whether to include a field `pandas_version` with the version + of pandas that last revised the table schema. This version + can be different from the installed pandas version. + + Returns + ------- + dict + + Notes + ----- + See `Table Schema + `__ for + conversion types. + Timedeltas as converted to ISO8601 duration format with + 9 decimal places after the seconds field for nanosecond precision. + + Categoricals are converted to the `any` dtype, and use the `enum` field + constraint to list the allowed values. The `ordered` attribute is included + in an `ordered` field. + + Examples + -------- + >>> from pandas.io.json._table_schema import build_table_schema + >>> df = pd.DataFrame( + ... {'A': [1, 2, 3], + ... 'B': ['a', 'b', 'c'], + ... 'C': pd.date_range('2016-01-01', freq='d', periods=3), + ... }, index=pd.Index(range(3), name='idx')) + >>> build_table_schema(df) + {'fields': \ +[{'name': 'idx', 'type': 'integer'}, \ +{'name': 'A', 'type': 'integer'}, \ +{'name': 'B', 'type': 'string'}, \ +{'name': 'C', 'type': 'datetime'}], \ +'primaryKey': ['idx'], \ +'pandas_version': '1.4.0'} + """ + if index is True: + data = set_default_names(data) + + schema: dict[str, Any] = {} + fields = [] + + if index: + if data.index.nlevels > 1: + data.index = cast("MultiIndex", data.index) + for level, name in zip(data.index.levels, data.index.names): + new_field = convert_pandas_type_to_json_field(level) + new_field["name"] = name + fields.append(new_field) + else: + fields.append(convert_pandas_type_to_json_field(data.index)) + + if data.ndim > 1: + for column, s in data.items(): + fields.append(convert_pandas_type_to_json_field(s)) + else: + fields.append(convert_pandas_type_to_json_field(data)) + + schema["fields"] = fields + if index and data.index.is_unique and primary_key is None: + if data.index.nlevels == 1: + schema["primaryKey"] = [data.index.name] + else: + schema["primaryKey"] = data.index.names + elif primary_key is not None: + schema["primaryKey"] = primary_key + + if version: + schema["pandas_version"] = TABLE_SCHEMA_VERSION + return schema + + +def parse_table_schema(json, precise_float: bool) -> DataFrame: + """ + Builds a DataFrame from a given schema + + Parameters + ---------- + json : + A JSON table schema + precise_float : bool + Flag controlling precision when decoding string to double values, as + dictated by ``read_json`` + + Returns + ------- + df : DataFrame + + Raises + ------ + NotImplementedError + If the JSON table schema contains either timezone or timedelta data + + Notes + ----- + Because :func:`DataFrame.to_json` uses the string 'index' to denote a + name-less :class:`Index`, this function sets the name of the returned + :class:`DataFrame` to ``None`` when said string is encountered with a + normal :class:`Index`. For a :class:`MultiIndex`, the same limitation + applies to any strings beginning with 'level_'. Therefore, an + :class:`Index` name of 'index' and :class:`MultiIndex` names starting + with 'level_' are not supported. + + See Also + -------- + build_table_schema : Inverse function. + pandas.read_json + """ + table = ujson_loads(json, precise_float=precise_float) + col_order = [field["name"] for field in table["schema"]["fields"]] + df = DataFrame(table["data"], columns=col_order)[col_order] + + dtypes = { + field["name"]: convert_json_field_to_pandas_type(field) + for field in table["schema"]["fields"] + } + + # No ISO constructor for Timedelta as of yet, so need to raise + if "timedelta64" in dtypes.values(): + raise NotImplementedError( + 'table="orient" can not yet read ISO-formatted Timedelta data' + ) + + df = df.astype(dtypes) + + if "primaryKey" in table["schema"]: + df = df.set_index(table["schema"]["primaryKey"]) + if len(df.index.names) == 1: + if df.index.name == "index": + df.index.name = None + else: + df.index.names = [ + None if x.startswith("level_") else x for x in df.index.names + ] + + return df diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/parsers/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/parsers/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..ff11968db15f0f7c6057a46c252a91daee7b9cd9 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/parsers/__init__.py @@ -0,0 +1,9 @@ +from pandas.io.parsers.readers import ( + TextFileReader, + TextParser, + read_csv, + read_fwf, + read_table, +) + +__all__ = ["TextFileReader", "TextParser", "read_csv", "read_fwf", "read_table"] diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/parsers/arrow_parser_wrapper.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/parsers/arrow_parser_wrapper.py new file mode 100644 index 0000000000000000000000000000000000000000..7fe5ecb0e54c2394955101ad13079e721123762d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/parsers/arrow_parser_wrapper.py @@ -0,0 +1,295 @@ +from __future__ import annotations + +from typing import TYPE_CHECKING +import warnings + +from pandas._libs import lib +from pandas.compat._optional import import_optional_dependency +from pandas.errors import ( + ParserError, + ParserWarning, +) +from pandas.util._exceptions import find_stack_level + +from pandas.core.dtypes.common import pandas_dtype +from pandas.core.dtypes.inference import is_integer + +from pandas.io._util import arrow_table_to_pandas +from pandas.io.parsers.base_parser import ParserBase + +if TYPE_CHECKING: + from pandas._typing import ReadBuffer + + from pandas import DataFrame + + +class ArrowParserWrapper(ParserBase): + """ + Wrapper for the pyarrow engine for read_csv() + """ + + def __init__(self, src: ReadBuffer[bytes], **kwds) -> None: + super().__init__(kwds) + self.kwds = kwds + self.src = src + + self._parse_kwds() + + def _parse_kwds(self) -> None: + """ + Validates keywords before passing to pyarrow. + """ + encoding: str | None = self.kwds.get("encoding") + self.encoding = "utf-8" if encoding is None else encoding + + na_values = self.kwds["na_values"] + if isinstance(na_values, dict): + raise ValueError( + "The pyarrow engine doesn't support passing a dict for na_values" + ) + self.na_values = list(self.kwds["na_values"]) + + def _get_pyarrow_options(self) -> None: + """ + Rename some arguments to pass to pyarrow + """ + mapping = { + "usecols": "include_columns", + "na_values": "null_values", + "escapechar": "escape_char", + "skip_blank_lines": "ignore_empty_lines", + "decimal": "decimal_point", + "quotechar": "quote_char", + } + for pandas_name, pyarrow_name in mapping.items(): + if pandas_name in self.kwds and self.kwds.get(pandas_name) is not None: + self.kwds[pyarrow_name] = self.kwds.pop(pandas_name) + + # Date format handling + # If we get a string, we need to convert it into a list for pyarrow + # If we get a dict, we want to parse those separately + date_format = self.date_format + if isinstance(date_format, str): + date_format = [date_format] + else: + # In case of dict, we don't want to propagate through, so + # just set to pyarrow default of None + + # Ideally, in future we disable pyarrow dtype inference (read in as string) + # to prevent misreads. + date_format = None + self.kwds["timestamp_parsers"] = date_format + + self.parse_options = { + option_name: option_value + for option_name, option_value in self.kwds.items() + if option_value is not None + and option_name + in ("delimiter", "quote_char", "escape_char", "ignore_empty_lines") + } + + on_bad_lines = self.kwds.get("on_bad_lines") + if on_bad_lines is not None: + if callable(on_bad_lines): + self.parse_options["invalid_row_handler"] = on_bad_lines + elif on_bad_lines == ParserBase.BadLineHandleMethod.ERROR: + self.parse_options[ + "invalid_row_handler" + ] = None # PyArrow raises an exception by default + elif on_bad_lines == ParserBase.BadLineHandleMethod.WARN: + + def handle_warning(invalid_row) -> str: + warnings.warn( + f"Expected {invalid_row.expected_columns} columns, but found " + f"{invalid_row.actual_columns}: {invalid_row.text}", + ParserWarning, + stacklevel=find_stack_level(), + ) + return "skip" + + self.parse_options["invalid_row_handler"] = handle_warning + elif on_bad_lines == ParserBase.BadLineHandleMethod.SKIP: + self.parse_options["invalid_row_handler"] = lambda _: "skip" + + self.convert_options = { + option_name: option_value + for option_name, option_value in self.kwds.items() + if option_value is not None + and option_name + in ( + "include_columns", + "null_values", + "true_values", + "false_values", + "decimal_point", + "timestamp_parsers", + ) + } + self.convert_options["strings_can_be_null"] = "" in self.kwds["null_values"] + # autogenerated column names are prefixed with 'f' in pyarrow.csv + if self.header is None and "include_columns" in self.convert_options: + self.convert_options["include_columns"] = [ + f"f{n}" for n in self.convert_options["include_columns"] + ] + + self.read_options = { + "autogenerate_column_names": self.header is None, + "skip_rows": self.header + if self.header is not None + else self.kwds["skiprows"], + "encoding": self.encoding, + } + + def _finalize_pandas_output(self, frame: DataFrame) -> DataFrame: + """ + Processes data read in based on kwargs. + + Parameters + ---------- + frame: DataFrame + The DataFrame to process. + + Returns + ------- + DataFrame + The processed DataFrame. + """ + num_cols = len(frame.columns) + multi_index_named = True + if self.header is None: + if self.names is None: + if self.header is None: + self.names = range(num_cols) + if len(self.names) != num_cols: + # usecols is passed through to pyarrow, we only handle index col here + # The only way self.names is not the same length as number of cols is + # if we have int index_col. We should just pad the names(they will get + # removed anyways) to expected length then. + columns_prefix = [str(x) for x in range(num_cols - len(self.names))] + self.names = columns_prefix + self.names + multi_index_named = False + frame.columns = self.names + # we only need the frame not the names + _, frame = self._do_date_conversions(frame.columns, frame) + if self.index_col is not None: + index_to_set = self.index_col.copy() + for i, item in enumerate(self.index_col): + if is_integer(item): + index_to_set[i] = frame.columns[item] + # String case + elif item not in frame.columns: + raise ValueError(f"Index {item} invalid") + + # Process dtype for index_col and drop from dtypes + if self.dtype is not None: + key, new_dtype = ( + (item, self.dtype.get(item)) + if self.dtype.get(item) is not None + else (frame.columns[item], self.dtype.get(frame.columns[item])) + ) + if new_dtype is not None: + frame[key] = frame[key].astype(new_dtype) + del self.dtype[key] + + frame.set_index(index_to_set, drop=True, inplace=True) + # Clear names if headerless and no name given + if self.header is None and not multi_index_named: + frame.index.names = [None] * len(frame.index.names) + + if self.dtype is not None: + # Ignore non-existent columns from dtype mapping + # like other parsers do + if isinstance(self.dtype, dict): + self.dtype = { + k: pandas_dtype(v) + for k, v in self.dtype.items() + if k in frame.columns + } + else: + self.dtype = pandas_dtype(self.dtype) + try: + frame = frame.astype(self.dtype) + except TypeError as e: + # GH#44901 reraise to keep api consistent + raise ValueError(e) + return frame + + def _validate_usecols(self, usecols) -> None: + if lib.is_list_like(usecols) and not all(isinstance(x, str) for x in usecols): + raise ValueError( + "The pyarrow engine does not allow 'usecols' to be integer " + "column positions. Pass a list of string column names instead." + ) + elif callable(usecols): + raise ValueError( + "The pyarrow engine does not allow 'usecols' to be a callable." + ) + + def read(self) -> DataFrame: + """ + Reads the contents of a CSV file into a DataFrame and + processes it according to the kwargs passed in the + constructor. + + Returns + ------- + DataFrame + The DataFrame created from the CSV file. + """ + pa = import_optional_dependency("pyarrow") + pyarrow_csv = import_optional_dependency("pyarrow.csv") + self._get_pyarrow_options() + + try: + convert_options = pyarrow_csv.ConvertOptions(**self.convert_options) + except TypeError: + include = self.convert_options.get("include_columns", None) + if include is not None: + self._validate_usecols(include) + + nulls = self.convert_options.get("null_values", set()) + if not lib.is_list_like(nulls) or not all( + isinstance(x, str) for x in nulls + ): + raise TypeError( + "The 'pyarrow' engine requires all na_values to be strings" + ) + + raise + + try: + table = pyarrow_csv.read_csv( + self.src, + read_options=pyarrow_csv.ReadOptions(**self.read_options), + parse_options=pyarrow_csv.ParseOptions(**self.parse_options), + convert_options=convert_options, + ) + except pa.ArrowInvalid as e: + raise ParserError(e) from e + + dtype_backend = self.kwds["dtype_backend"] + + # Convert all pa.null() cols -> float64 (non nullable) + # else Int64 (nullable case, see below) + if dtype_backend is lib.no_default: + new_schema = table.schema + new_type = pa.float64() + for i, arrow_type in enumerate(table.schema.types): + if pa.types.is_null(arrow_type): + new_schema = new_schema.set( + i, new_schema.field(i).with_type(new_type) + ) + + table = table.cast(new_schema) + + with warnings.catch_warnings(): + warnings.filterwarnings( + "ignore", + "make_block is deprecated", + DeprecationWarning, + ) + frame = arrow_table_to_pandas( + table, dtype_backend=dtype_backend, null_to_int64=True + ) + + return self._finalize_pandas_output(frame) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/parsers/base_parser.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/parsers/base_parser.py new file mode 100644 index 0000000000000000000000000000000000000000..40e3ea645064785a965783b2a86ef10b282a7045 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/parsers/base_parser.py @@ -0,0 +1,1462 @@ +from __future__ import annotations + +from collections import defaultdict +from copy import copy +import csv +import datetime +from enum import Enum +import itertools +from typing import ( + TYPE_CHECKING, + Any, + Callable, + cast, + final, + overload, +) +import warnings + +import numpy as np + +from pandas._libs import ( + lib, + parsers, +) +import pandas._libs.ops as libops +from pandas._libs.parsers import STR_NA_VALUES +from pandas._libs.tslibs import parsing +from pandas.compat._optional import import_optional_dependency +from pandas.errors import ( + ParserError, + ParserWarning, +) +from pandas.util._exceptions import find_stack_level + +from pandas.core.dtypes.astype import astype_array +from pandas.core.dtypes.common import ( + ensure_object, + is_bool_dtype, + is_dict_like, + is_extension_array_dtype, + is_float_dtype, + is_integer, + is_integer_dtype, + is_list_like, + is_object_dtype, + is_scalar, + is_string_dtype, + pandas_dtype, +) +from pandas.core.dtypes.dtypes import ( + CategoricalDtype, + ExtensionDtype, +) +from pandas.core.dtypes.missing import isna + +from pandas import ( + ArrowDtype, + DataFrame, + DatetimeIndex, + StringDtype, + concat, +) +from pandas.core import algorithms +from pandas.core.arrays import ( + ArrowExtensionArray, + BaseMaskedArray, + BooleanArray, + Categorical, + ExtensionArray, + FloatingArray, + IntegerArray, +) +from pandas.core.arrays.boolean import BooleanDtype +from pandas.core.indexes.api import ( + Index, + MultiIndex, + default_index, + ensure_index_from_sequences, +) +from pandas.core.series import Series +from pandas.core.tools import datetimes as tools + +from pandas.io.common import is_potential_multi_index + +if TYPE_CHECKING: + from collections.abc import ( + Hashable, + Iterable, + Mapping, + Sequence, + ) + + from pandas._typing import ( + ArrayLike, + DtypeArg, + DtypeObj, + Scalar, + ) + + +class ParserBase: + class BadLineHandleMethod(Enum): + ERROR = 0 + WARN = 1 + SKIP = 2 + + _implicit_index: bool + _first_chunk: bool + keep_default_na: bool + dayfirst: bool + cache_dates: bool + keep_date_col: bool + usecols_dtype: str | None + + def __init__(self, kwds) -> None: + self._implicit_index = False + + self.names = kwds.get("names") + self.orig_names: Sequence[Hashable] | None = None + + self.index_col = kwds.get("index_col", None) + self.unnamed_cols: set = set() + self.index_names: Sequence[Hashable] | None = None + self.col_names: Sequence[Hashable] | None = None + + self.parse_dates = _validate_parse_dates_arg(kwds.pop("parse_dates", False)) + self._parse_date_cols: Iterable = [] + self.date_parser = kwds.pop("date_parser", lib.no_default) + self.date_format = kwds.pop("date_format", None) + self.dayfirst = kwds.pop("dayfirst", False) + self.keep_date_col = kwds.pop("keep_date_col", False) + + self.na_values = kwds.get("na_values") + self.na_fvalues = kwds.get("na_fvalues") + self.na_filter = kwds.get("na_filter", False) + self.keep_default_na = kwds.get("keep_default_na", True) + + self.dtype = copy(kwds.get("dtype", None)) + self.converters = kwds.get("converters") + self.dtype_backend = kwds.get("dtype_backend") + + self.true_values = kwds.get("true_values") + self.false_values = kwds.get("false_values") + self.cache_dates = kwds.pop("cache_dates", True) + + self._date_conv = _make_date_converter( + date_parser=self.date_parser, + date_format=self.date_format, + dayfirst=self.dayfirst, + cache_dates=self.cache_dates, + ) + + # validate header options for mi + self.header = kwds.get("header") + if is_list_like(self.header, allow_sets=False): + if kwds.get("usecols"): + raise ValueError( + "cannot specify usecols when specifying a multi-index header" + ) + if kwds.get("names"): + raise ValueError( + "cannot specify names when specifying a multi-index header" + ) + + # validate index_col that only contains integers + if self.index_col is not None: + # In this case we can pin down index_col as list[int] + if is_integer(self.index_col): + self.index_col = [self.index_col] + elif not ( + is_list_like(self.index_col, allow_sets=False) + and all(map(is_integer, self.index_col)) + ): + raise ValueError( + "index_col must only contain row numbers " + "when specifying a multi-index header" + ) + else: + self.index_col = list(self.index_col) + + self._name_processed = False + + self._first_chunk = True + + self.usecols, self.usecols_dtype = self._validate_usecols_arg(kwds["usecols"]) + + # Fallback to error to pass a sketchy test(test_override_set_noconvert_columns) + # Normally, this arg would get pre-processed earlier on + self.on_bad_lines = kwds.get("on_bad_lines", self.BadLineHandleMethod.ERROR) + + def _validate_parse_dates_presence(self, columns: Sequence[Hashable]) -> Iterable: + """ + Check if parse_dates are in columns. + + If user has provided names for parse_dates, check if those columns + are available. + + Parameters + ---------- + columns : list + List of names of the dataframe. + + Returns + ------- + The names of the columns which will get parsed later if a dict or list + is given as specification. + + Raises + ------ + ValueError + If column to parse_date is not in dataframe. + + """ + cols_needed: Iterable + if is_dict_like(self.parse_dates): + cols_needed = itertools.chain(*self.parse_dates.values()) + elif is_list_like(self.parse_dates): + # a column in parse_dates could be represented + # ColReference = Union[int, str] + # DateGroups = List[ColReference] + # ParseDates = Union[DateGroups, List[DateGroups], + # Dict[ColReference, DateGroups]] + cols_needed = itertools.chain.from_iterable( + col if is_list_like(col) and not isinstance(col, tuple) else [col] + for col in self.parse_dates + ) + else: + cols_needed = [] + + cols_needed = list(cols_needed) + + # get only columns that are references using names (str), not by index + missing_cols = ", ".join( + sorted( + { + col + for col in cols_needed + if isinstance(col, str) and col not in columns + } + ) + ) + if missing_cols: + raise ValueError( + f"Missing column provided to 'parse_dates': '{missing_cols}'" + ) + # Convert positions to actual column names + return [ + col if (isinstance(col, str) or col in columns) else columns[col] + for col in cols_needed + ] + + def close(self) -> None: + pass + + @final + @property + def _has_complex_date_col(self) -> bool: + return isinstance(self.parse_dates, dict) or ( + isinstance(self.parse_dates, list) + and len(self.parse_dates) > 0 + and isinstance(self.parse_dates[0], list) + ) + + @final + def _should_parse_dates(self, i: int) -> bool: + if lib.is_bool(self.parse_dates): + return bool(self.parse_dates) + else: + if self.index_names is not None: + name = self.index_names[i] + else: + name = None + j = i if self.index_col is None else self.index_col[i] + + return (j in self.parse_dates) or ( + name is not None and name in self.parse_dates + ) + + @final + def _extract_multi_indexer_columns( + self, + header, + index_names: Sequence[Hashable] | None, + passed_names: bool = False, + ) -> tuple[ + Sequence[Hashable], Sequence[Hashable] | None, Sequence[Hashable] | None, bool + ]: + """ + Extract and return the names, index_names, col_names if the column + names are a MultiIndex. + + Parameters + ---------- + header: list of lists + The header rows + index_names: list, optional + The names of the future index + passed_names: bool, default False + A flag specifying if names where passed + + """ + if len(header) < 2: + return header[0], index_names, None, passed_names + + # the names are the tuples of the header that are not the index cols + # 0 is the name of the index, assuming index_col is a list of column + # numbers + ic = self.index_col + if ic is None: + ic = [] + + if not isinstance(ic, (list, tuple, np.ndarray)): + ic = [ic] + sic = set(ic) + + # clean the index_names + index_names = header.pop(-1) + index_names, _, _ = self._clean_index_names(index_names, self.index_col) + + # extract the columns + field_count = len(header[0]) + + # check if header lengths are equal + if not all(len(header_iter) == field_count for header_iter in header[1:]): + raise ParserError("Header rows must have an equal number of columns.") + + def extract(r): + return tuple(r[i] for i in range(field_count) if i not in sic) + + columns = list(zip(*(extract(r) for r in header))) + names = columns.copy() + for single_ic in sorted(ic): + names.insert(single_ic, single_ic) + + # Clean the column names (if we have an index_col). + if len(ic): + col_names = [ + r[ic[0]] + if ((r[ic[0]] is not None) and r[ic[0]] not in self.unnamed_cols) + else None + for r in header + ] + else: + col_names = [None] * len(header) + + passed_names = True + + return names, index_names, col_names, passed_names + + @final + def _maybe_make_multi_index_columns( + self, + columns: Sequence[Hashable], + col_names: Sequence[Hashable] | None = None, + ) -> Sequence[Hashable] | MultiIndex: + # possibly create a column mi here + if is_potential_multi_index(columns): + list_columns = cast(list[tuple], columns) + return MultiIndex.from_tuples(list_columns, names=col_names) + return columns + + @final + def _make_index( + self, data, alldata, columns, indexnamerow: list[Scalar] | None = None + ) -> tuple[Index | None, Sequence[Hashable] | MultiIndex]: + index: Index | None + if not is_index_col(self.index_col) or not self.index_col: + index = None + + elif not self._has_complex_date_col: + simple_index = self._get_simple_index(alldata, columns) + index = self._agg_index(simple_index) + elif self._has_complex_date_col: + if not self._name_processed: + (self.index_names, _, self.index_col) = self._clean_index_names( + list(columns), self.index_col + ) + self._name_processed = True + date_index = self._get_complex_date_index(data, columns) + index = self._agg_index(date_index, try_parse_dates=False) + + # add names for the index + if indexnamerow: + coffset = len(indexnamerow) - len(columns) + assert index is not None + index = index.set_names(indexnamerow[:coffset]) + + # maybe create a mi on the columns + columns = self._maybe_make_multi_index_columns(columns, self.col_names) + + return index, columns + + @final + def _get_simple_index(self, data, columns): + def ix(col): + if not isinstance(col, str): + return col + raise ValueError(f"Index {col} invalid") + + to_remove = [] + index = [] + for idx in self.index_col: + i = ix(idx) + to_remove.append(i) + index.append(data[i]) + + # remove index items from content and columns, don't pop in + # loop + for i in sorted(to_remove, reverse=True): + data.pop(i) + if not self._implicit_index: + columns.pop(i) + + return index + + @final + def _get_complex_date_index(self, data, col_names): + def _get_name(icol): + if isinstance(icol, str): + return icol + + if col_names is None: + raise ValueError(f"Must supply column order to use {icol!s} as index") + + for i, c in enumerate(col_names): + if i == icol: + return c + + to_remove = [] + index = [] + for idx in self.index_col: + name = _get_name(idx) + to_remove.append(name) + index.append(data[name]) + + # remove index items from content and columns, don't pop in + # loop + for c in sorted(to_remove, reverse=True): + data.pop(c) + col_names.remove(c) + + return index + + @final + def _clean_mapping(self, mapping): + """converts col numbers to names""" + if not isinstance(mapping, dict): + return mapping + clean = {} + # for mypy + assert self.orig_names is not None + + for col, v in mapping.items(): + if isinstance(col, int) and col not in self.orig_names: + col = self.orig_names[col] + clean[col] = v + if isinstance(mapping, defaultdict): + remaining_cols = set(self.orig_names) - set(clean.keys()) + clean.update({col: mapping[col] for col in remaining_cols}) + return clean + + @final + def _agg_index(self, index, try_parse_dates: bool = True) -> Index: + arrays = [] + converters = self._clean_mapping(self.converters) + + if self.index_names is not None: + names: Iterable = self.index_names + else: + names = itertools.cycle([None]) + for i, (arr, name) in enumerate(zip(index, names)): + if try_parse_dates and self._should_parse_dates(i): + arr = self._date_conv( + arr, + col=self.index_names[i] if self.index_names is not None else None, + ) + + if self.na_filter: + col_na_values = self.na_values + col_na_fvalues = self.na_fvalues + else: + col_na_values = set() + col_na_fvalues = set() + + if isinstance(self.na_values, dict): + assert self.index_names is not None + col_name = self.index_names[i] + if col_name is not None: + col_na_values, col_na_fvalues = _get_na_values( + col_name, self.na_values, self.na_fvalues, self.keep_default_na + ) + + clean_dtypes = self._clean_mapping(self.dtype) + + cast_type = None + index_converter = False + if self.index_names is not None: + if isinstance(clean_dtypes, dict): + cast_type = clean_dtypes.get(self.index_names[i], None) + + if isinstance(converters, dict): + index_converter = converters.get(self.index_names[i]) is not None + + try_num_bool = not ( + cast_type and is_string_dtype(cast_type) or index_converter + ) + + arr, _ = self._infer_types( + arr, col_na_values | col_na_fvalues, cast_type is None, try_num_bool + ) + if cast_type is not None: + # Don't perform RangeIndex inference + idx = Index(arr, name=name, dtype=cast_type) + else: + idx = ensure_index_from_sequences([arr], [name]) + arrays.append(idx) + + if len(arrays) == 1: + return arrays[0] + else: + return MultiIndex.from_arrays(arrays) + + @final + def _convert_to_ndarrays( + self, + dct: Mapping, + na_values, + na_fvalues, + verbose: bool = False, + converters=None, + dtypes=None, + ): + result = {} + for c, values in dct.items(): + conv_f = None if converters is None else converters.get(c, None) + if isinstance(dtypes, dict): + cast_type = dtypes.get(c, None) + else: + # single dtype or None + cast_type = dtypes + + if self.na_filter: + col_na_values, col_na_fvalues = _get_na_values( + c, na_values, na_fvalues, self.keep_default_na + ) + else: + col_na_values, col_na_fvalues = set(), set() + + if c in self._parse_date_cols: + # GH#26203 Do not convert columns which get converted to dates + # but replace nans to ensure to_datetime works + mask = algorithms.isin(values, set(col_na_values) | col_na_fvalues) + np.putmask(values, mask, np.nan) + result[c] = values + continue + + if conv_f is not None: + # conv_f applied to data before inference + if cast_type is not None: + warnings.warn( + ( + "Both a converter and dtype were specified " + f"for column {c} - only the converter will be used." + ), + ParserWarning, + stacklevel=find_stack_level(), + ) + + try: + values = lib.map_infer(values, conv_f) + except ValueError: + mask = algorithms.isin(values, list(na_values)).view(np.uint8) + values = lib.map_infer_mask(values, conv_f, mask) + + cvals, na_count = self._infer_types( + values, + set(col_na_values) | col_na_fvalues, + cast_type is None, + try_num_bool=False, + ) + else: + is_ea = is_extension_array_dtype(cast_type) + is_str_or_ea_dtype = is_ea or is_string_dtype(cast_type) + # skip inference if specified dtype is object + # or casting to an EA + try_num_bool = not (cast_type and is_str_or_ea_dtype) + + # general type inference and conversion + cvals, na_count = self._infer_types( + values, + set(col_na_values) | col_na_fvalues, + cast_type is None, + try_num_bool, + ) + + # type specified in dtype param or cast_type is an EA + if cast_type is not None: + cast_type = pandas_dtype(cast_type) + if cast_type and (cvals.dtype != cast_type or is_ea): + if not is_ea and na_count > 0: + if is_bool_dtype(cast_type): + raise ValueError(f"Bool column has NA values in column {c}") + cvals = self._cast_types(cvals, cast_type, c) + + result[c] = cvals + if verbose and na_count: + print(f"Filled {na_count} NA values in column {c!s}") + return result + + @final + def _set_noconvert_dtype_columns( + self, col_indices: list[int], names: Sequence[Hashable] + ) -> set[int]: + """ + Set the columns that should not undergo dtype conversions. + + Currently, any column that is involved with date parsing will not + undergo such conversions. If usecols is specified, the positions of the columns + not to cast is relative to the usecols not to all columns. + + Parameters + ---------- + col_indices: The indices specifying order and positions of the columns + names: The column names which order is corresponding with the order + of col_indices + + Returns + ------- + A set of integers containing the positions of the columns not to convert. + """ + usecols: list[int] | list[str] | None + noconvert_columns = set() + if self.usecols_dtype == "integer": + # A set of integers will be converted to a list in + # the correct order every single time. + usecols = sorted(self.usecols) + elif callable(self.usecols) or self.usecols_dtype not in ("empty", None): + # The names attribute should have the correct columns + # in the proper order for indexing with parse_dates. + usecols = col_indices + else: + # Usecols is empty. + usecols = None + + def _set(x) -> int: + if usecols is not None and is_integer(x): + x = usecols[x] + + if not is_integer(x): + x = col_indices[names.index(x)] + + return x + + if isinstance(self.parse_dates, list): + for val in self.parse_dates: + if isinstance(val, list): + for k in val: + noconvert_columns.add(_set(k)) + else: + noconvert_columns.add(_set(val)) + + elif isinstance(self.parse_dates, dict): + for val in self.parse_dates.values(): + if isinstance(val, list): + for k in val: + noconvert_columns.add(_set(k)) + else: + noconvert_columns.add(_set(val)) + + elif self.parse_dates: + if isinstance(self.index_col, list): + for k in self.index_col: + noconvert_columns.add(_set(k)) + elif self.index_col is not None: + noconvert_columns.add(_set(self.index_col)) + + return noconvert_columns + + @final + def _infer_types( + self, values, na_values, no_dtype_specified, try_num_bool: bool = True + ) -> tuple[ArrayLike, int]: + """ + Infer types of values, possibly casting + + Parameters + ---------- + values : ndarray + na_values : set + no_dtype_specified: Specifies if we want to cast explicitly + try_num_bool : bool, default try + try to cast values to numeric (first preference) or boolean + + Returns + ------- + converted : ndarray or ExtensionArray + na_count : int + """ + na_count = 0 + if issubclass(values.dtype.type, (np.number, np.bool_)): + # If our array has numeric dtype, we don't have to check for strings in isin + na_values = np.array([val for val in na_values if not isinstance(val, str)]) + mask = algorithms.isin(values, na_values) + na_count = mask.astype("uint8", copy=False).sum() + if na_count > 0: + if is_integer_dtype(values): + values = values.astype(np.float64) + np.putmask(values, mask, np.nan) + return values, na_count + + dtype_backend = self.dtype_backend + non_default_dtype_backend = ( + no_dtype_specified and dtype_backend is not lib.no_default + ) + result: ArrayLike + + if try_num_bool and is_object_dtype(values.dtype): + # exclude e.g DatetimeIndex here + try: + result, result_mask = lib.maybe_convert_numeric( + values, + na_values, + False, + convert_to_masked_nullable=non_default_dtype_backend, # type: ignore[arg-type] + ) + except (ValueError, TypeError): + # e.g. encountering datetime string gets ValueError + # TypeError can be raised in floatify + na_count = parsers.sanitize_objects(values, na_values) + result = values + else: + if non_default_dtype_backend: + if result_mask is None: + result_mask = np.zeros(result.shape, dtype=np.bool_) + + if result_mask.all(): + result = IntegerArray( + np.ones(result_mask.shape, dtype=np.int64), result_mask + ) + elif is_integer_dtype(result): + result = IntegerArray(result, result_mask) + elif is_bool_dtype(result): + result = BooleanArray(result, result_mask) + elif is_float_dtype(result): + result = FloatingArray(result, result_mask) + + na_count = result_mask.sum() + else: + na_count = isna(result).sum() + else: + result = values + if values.dtype == np.object_: + na_count = parsers.sanitize_objects(values, na_values) + + if result.dtype == np.object_ and try_num_bool: + result, bool_mask = libops.maybe_convert_bool( + np.asarray(values), + true_values=self.true_values, + false_values=self.false_values, + convert_to_masked_nullable=non_default_dtype_backend, # type: ignore[arg-type] + ) + if result.dtype == np.bool_ and non_default_dtype_backend: + if bool_mask is None: + bool_mask = np.zeros(result.shape, dtype=np.bool_) + result = BooleanArray(result, bool_mask) + elif result.dtype == np.object_ and non_default_dtype_backend: + # read_excel sends array of datetime objects + if not lib.is_datetime_array(result, skipna=True): + dtype = StringDtype() + cls = dtype.construct_array_type() + result = cls._from_sequence(values, dtype=dtype) + + if dtype_backend == "pyarrow": + pa = import_optional_dependency("pyarrow") + if isinstance(result, np.ndarray): + result = ArrowExtensionArray(pa.array(result, from_pandas=True)) + elif isinstance(result, BaseMaskedArray): + if result._mask.all(): + # We want an arrow null array here + result = ArrowExtensionArray(pa.array([None] * len(result))) + else: + result = ArrowExtensionArray( + pa.array(result._data, mask=result._mask) + ) + else: + result = ArrowExtensionArray( + pa.array(result.to_numpy(), from_pandas=True) + ) + + return result, na_count + + @final + def _cast_types(self, values: ArrayLike, cast_type: DtypeObj, column) -> ArrayLike: + """ + Cast values to specified type + + Parameters + ---------- + values : ndarray or ExtensionArray + cast_type : np.dtype or ExtensionDtype + dtype to cast values to + column : string + column name - used only for error reporting + + Returns + ------- + converted : ndarray or ExtensionArray + """ + if isinstance(cast_type, CategoricalDtype): + known_cats = cast_type.categories is not None + + if not is_object_dtype(values.dtype) and not known_cats: + # TODO: this is for consistency with + # c-parser which parses all categories + # as strings + values = lib.ensure_string_array( + values, skipna=False, convert_na_value=False + ) + + cats = Index(values).unique().dropna() + values = Categorical._from_inferred_categories( + cats, cats.get_indexer(values), cast_type, true_values=self.true_values + ) + + # use the EA's implementation of casting + elif isinstance(cast_type, ExtensionDtype): + array_type = cast_type.construct_array_type() + try: + if isinstance(cast_type, BooleanDtype): + # error: Unexpected keyword argument "true_values" for + # "_from_sequence_of_strings" of "ExtensionArray" + return array_type._from_sequence_of_strings( # type: ignore[call-arg] + values, + dtype=cast_type, + true_values=self.true_values, + false_values=self.false_values, + ) + else: + return array_type._from_sequence_of_strings(values, dtype=cast_type) + except NotImplementedError as err: + raise NotImplementedError( + f"Extension Array: {array_type} must implement " + "_from_sequence_of_strings in order to be used in parser methods" + ) from err + + elif isinstance(values, ExtensionArray): + values = values.astype(cast_type, copy=False) + elif issubclass(cast_type.type, str): + # TODO: why skipna=True here and False above? some tests depend + # on it here, but nothing fails if we change it above + # (as no tests get there as of 2022-12-06) + values = lib.ensure_string_array( + values, skipna=True, convert_na_value=False + ) + else: + try: + values = astype_array(values, cast_type, copy=True) + except ValueError as err: + raise ValueError( + f"Unable to convert column {column} to type {cast_type}" + ) from err + return values + + @overload + def _do_date_conversions( + self, + names: Index, + data: DataFrame, + ) -> tuple[Sequence[Hashable] | Index, DataFrame]: + ... + + @overload + def _do_date_conversions( + self, + names: Sequence[Hashable], + data: Mapping[Hashable, ArrayLike], + ) -> tuple[Sequence[Hashable], Mapping[Hashable, ArrayLike]]: + ... + + @final + def _do_date_conversions( + self, + names: Sequence[Hashable] | Index, + data: Mapping[Hashable, ArrayLike] | DataFrame, + ) -> tuple[Sequence[Hashable] | Index, Mapping[Hashable, ArrayLike] | DataFrame]: + # returns data, columns + + if self.parse_dates is not None: + data, names = _process_date_conversion( + data, + self._date_conv, + self.parse_dates, + self.index_col, + self.index_names, + names, + keep_date_col=self.keep_date_col, + dtype_backend=self.dtype_backend, + ) + + return names, data + + @final + def _check_data_length( + self, + columns: Sequence[Hashable], + data: Sequence[ArrayLike], + ) -> None: + """Checks if length of data is equal to length of column names. + + One set of trailing commas is allowed. self.index_col not False + results in a ParserError previously when lengths do not match. + + Parameters + ---------- + columns: list of column names + data: list of array-likes containing the data column-wise. + """ + if not self.index_col and len(columns) != len(data) and columns: + empty_str = is_object_dtype(data[-1]) and data[-1] == "" + # error: No overload variant of "__ror__" of "ndarray" matches + # argument type "ExtensionArray" + empty_str_or_na = empty_str | isna(data[-1]) # type: ignore[operator] + if len(columns) == len(data) - 1 and np.all(empty_str_or_na): + return + warnings.warn( + "Length of header or names does not match length of data. This leads " + "to a loss of data with index_col=False.", + ParserWarning, + stacklevel=find_stack_level(), + ) + + @overload + def _evaluate_usecols( + self, + usecols: set[int] | Callable[[Hashable], object], + names: Sequence[Hashable], + ) -> set[int]: + ... + + @overload + def _evaluate_usecols( + self, usecols: set[str], names: Sequence[Hashable] + ) -> set[str]: + ... + + @final + def _evaluate_usecols( + self, + usecols: Callable[[Hashable], object] | set[str] | set[int], + names: Sequence[Hashable], + ) -> set[str] | set[int]: + """ + Check whether or not the 'usecols' parameter + is a callable. If so, enumerates the 'names' + parameter and returns a set of indices for + each entry in 'names' that evaluates to True. + If not a callable, returns 'usecols'. + """ + if callable(usecols): + return {i for i, name in enumerate(names) if usecols(name)} + return usecols + + @final + def _validate_usecols_names(self, usecols, names: Sequence): + """ + Validates that all usecols are present in a given + list of names. If not, raise a ValueError that + shows what usecols are missing. + + Parameters + ---------- + usecols : iterable of usecols + The columns to validate are present in names. + names : iterable of names + The column names to check against. + + Returns + ------- + usecols : iterable of usecols + The `usecols` parameter if the validation succeeds. + + Raises + ------ + ValueError : Columns were missing. Error message will list them. + """ + missing = [c for c in usecols if c not in names] + if len(missing) > 0: + raise ValueError( + f"Usecols do not match columns, columns expected but not found: " + f"{missing}" + ) + + return usecols + + @final + def _validate_usecols_arg(self, usecols): + """ + Validate the 'usecols' parameter. + + Checks whether or not the 'usecols' parameter contains all integers + (column selection by index), strings (column by name) or is a callable. + Raises a ValueError if that is not the case. + + Parameters + ---------- + usecols : list-like, callable, or None + List of columns to use when parsing or a callable that can be used + to filter a list of table columns. + + Returns + ------- + usecols_tuple : tuple + A tuple of (verified_usecols, usecols_dtype). + + 'verified_usecols' is either a set if an array-like is passed in or + 'usecols' if a callable or None is passed in. + + 'usecols_dtype` is the inferred dtype of 'usecols' if an array-like + is passed in or None if a callable or None is passed in. + """ + msg = ( + "'usecols' must either be list-like of all strings, all unicode, " + "all integers or a callable." + ) + if usecols is not None: + if callable(usecols): + return usecols, None + + if not is_list_like(usecols): + # see gh-20529 + # + # Ensure it is iterable container but not string. + raise ValueError(msg) + + usecols_dtype = lib.infer_dtype(usecols, skipna=False) + + if usecols_dtype not in ("empty", "integer", "string"): + raise ValueError(msg) + + usecols = set(usecols) + + return usecols, usecols_dtype + return usecols, None + + @final + def _clean_index_names(self, columns, index_col) -> tuple[list | None, list, list]: + if not is_index_col(index_col): + return None, columns, index_col + + columns = list(columns) + + # In case of no rows and multiindex columns we have to set index_names to + # list of Nones GH#38292 + if not columns: + return [None] * len(index_col), columns, index_col + + cp_cols = list(columns) + index_names: list[str | int | None] = [] + + # don't mutate + index_col = list(index_col) + + for i, c in enumerate(index_col): + if isinstance(c, str): + index_names.append(c) + for j, name in enumerate(cp_cols): + if name == c: + index_col[i] = j + columns.remove(name) + break + else: + name = cp_cols[c] + columns.remove(name) + index_names.append(name) + + # Only clean index names that were placeholders. + for i, name in enumerate(index_names): + if isinstance(name, str) and name in self.unnamed_cols: + index_names[i] = None + + return index_names, columns, index_col + + @final + def _get_empty_meta(self, columns, dtype: DtypeArg | None = None): + columns = list(columns) + + index_col = self.index_col + index_names = self.index_names + + # Convert `dtype` to a defaultdict of some kind. + # This will enable us to write `dtype[col_name]` + # without worrying about KeyError issues later on. + dtype_dict: defaultdict[Hashable, Any] + if not is_dict_like(dtype): + # if dtype == None, default will be object. + dtype_dict = defaultdict(lambda: dtype) + else: + dtype = cast(dict, dtype) + dtype_dict = defaultdict( + lambda: None, + {columns[k] if is_integer(k) else k: v for k, v in dtype.items()}, + ) + + # Even though we have no data, the "index" of the empty DataFrame + # could for example still be an empty MultiIndex. Thus, we need to + # check whether we have any index columns specified, via either: + # + # 1) index_col (column indices) + # 2) index_names (column names) + # + # Both must be non-null to ensure a successful construction. Otherwise, + # we have to create a generic empty Index. + index: Index + if (index_col is None or index_col is False) or index_names is None: + index = default_index(0) + else: + # TODO: We could return default_index(0) if dtype_dict[name] is None + data = [ + Index([], name=name, dtype=dtype_dict[name]) for name in index_names + ] + if len(data) == 1: + index = data[0] + else: + index = MultiIndex.from_arrays(data) + index_col.sort() + + for i, n in enumerate(index_col): + columns.pop(n - i) + + col_dict = { + col_name: Series([], dtype=dtype_dict[col_name]) for col_name in columns + } + + return index, columns, col_dict + + +def _make_date_converter( + date_parser=lib.no_default, + dayfirst: bool = False, + cache_dates: bool = True, + date_format: dict[Hashable, str] | str | None = None, +): + if date_parser is not lib.no_default: + warnings.warn( + "The argument 'date_parser' is deprecated and will " + "be removed in a future version. " + "Please use 'date_format' instead, or read your data in as 'object' dtype " + "and then call 'to_datetime'.", + FutureWarning, + stacklevel=find_stack_level(), + ) + if date_parser is not lib.no_default and date_format is not None: + raise TypeError("Cannot use both 'date_parser' and 'date_format'") + + def unpack_if_single_element(arg): + # NumPy 1.25 deprecation: https://github.com/numpy/numpy/pull/10615 + if isinstance(arg, np.ndarray) and arg.ndim == 1 and len(arg) == 1: + return arg[0] + return arg + + def converter(*date_cols, col: Hashable): + if len(date_cols) == 1 and date_cols[0].dtype.kind in "Mm": + return date_cols[0] + + if date_parser is lib.no_default: + strs = parsing.concat_date_cols(date_cols) + date_fmt = ( + date_format.get(col) if isinstance(date_format, dict) else date_format + ) + + with warnings.catch_warnings(): + warnings.filterwarnings( + "ignore", + ".*parsing datetimes with mixed time zones will raise an error", + category=FutureWarning, + ) + str_objs = ensure_object(strs) + try: + result = tools.to_datetime( + str_objs, + format=date_fmt, + utc=False, + dayfirst=dayfirst, + cache=cache_dates, + ) + except (ValueError, TypeError): + # test_usecols_with_parse_dates4 + return str_objs + + if isinstance(result, DatetimeIndex): + arr = result.to_numpy() + arr.flags.writeable = True + return arr + return result._values + else: + try: + with warnings.catch_warnings(): + warnings.filterwarnings( + "ignore", + ".*parsing datetimes with mixed time zones " + "will raise an error", + category=FutureWarning, + ) + pre_parsed = date_parser( + *(unpack_if_single_element(arg) for arg in date_cols) + ) + try: + result = tools.to_datetime( + pre_parsed, + cache=cache_dates, + ) + except (ValueError, TypeError): + # test_read_csv_with_custom_date_parser + result = pre_parsed + if isinstance(result, datetime.datetime): + raise Exception("scalar parser") + return result + except Exception: + # e.g. test_datetime_fractional_seconds + with warnings.catch_warnings(): + warnings.filterwarnings( + "ignore", + ".*parsing datetimes with mixed time zones " + "will raise an error", + category=FutureWarning, + ) + pre_parsed = parsing.try_parse_dates( + parsing.concat_date_cols(date_cols), + parser=date_parser, + ) + try: + return tools.to_datetime(pre_parsed) + except (ValueError, TypeError): + # TODO: not reached in tests 2023-10-27; needed? + return pre_parsed + + return converter + + +parser_defaults = { + "delimiter": None, + "escapechar": None, + "quotechar": '"', + "quoting": csv.QUOTE_MINIMAL, + "doublequote": True, + "skipinitialspace": False, + "lineterminator": None, + "header": "infer", + "index_col": None, + "names": None, + "skiprows": None, + "skipfooter": 0, + "nrows": None, + "na_values": None, + "keep_default_na": True, + "true_values": None, + "false_values": None, + "converters": None, + "dtype": None, + "cache_dates": True, + "thousands": None, + "comment": None, + "decimal": ".", + # 'engine': 'c', + "parse_dates": False, + "keep_date_col": False, + "dayfirst": False, + "date_parser": lib.no_default, + "date_format": None, + "usecols": None, + # 'iterator': False, + "chunksize": None, + "verbose": False, + "encoding": None, + "compression": None, + "skip_blank_lines": True, + "encoding_errors": "strict", + "on_bad_lines": ParserBase.BadLineHandleMethod.ERROR, + "dtype_backend": lib.no_default, +} + + +def _process_date_conversion( + data_dict, + converter: Callable, + parse_spec, + index_col, + index_names, + columns, + keep_date_col: bool = False, + dtype_backend=lib.no_default, +): + def _isindex(colspec): + return (isinstance(index_col, list) and colspec in index_col) or ( + isinstance(index_names, list) and colspec in index_names + ) + + new_cols = [] + new_data = {} + + orig_names = columns + columns = list(columns) + + date_cols = set() + + if parse_spec is None or isinstance(parse_spec, bool): + return data_dict, columns + + if isinstance(parse_spec, list): + # list of column lists + for colspec in parse_spec: + if is_scalar(colspec) or isinstance(colspec, tuple): + if isinstance(colspec, int) and colspec not in data_dict: + colspec = orig_names[colspec] + if _isindex(colspec): + continue + elif dtype_backend == "pyarrow": + import pyarrow as pa + + dtype = data_dict[colspec].dtype + if isinstance(dtype, ArrowDtype) and ( + pa.types.is_timestamp(dtype.pyarrow_dtype) + or pa.types.is_date(dtype.pyarrow_dtype) + ): + continue + + # Pyarrow engine returns Series which we need to convert to + # numpy array before converter, its a no-op for other parsers + data_dict[colspec] = converter( + np.asarray(data_dict[colspec]), col=colspec + ) + else: + new_name, col, old_names = _try_convert_dates( + converter, colspec, data_dict, orig_names + ) + if new_name in data_dict: + raise ValueError(f"New date column already in dict {new_name}") + new_data[new_name] = col + new_cols.append(new_name) + date_cols.update(old_names) + + elif isinstance(parse_spec, dict): + # dict of new name to column list + for new_name, colspec in parse_spec.items(): + if new_name in data_dict: + raise ValueError(f"Date column {new_name} already in dict") + + _, col, old_names = _try_convert_dates( + converter, + colspec, + data_dict, + orig_names, + target_name=new_name, + ) + + new_data[new_name] = col + + # If original column can be converted to date we keep the converted values + # This can only happen if values are from single column + if len(colspec) == 1: + new_data[colspec[0]] = col + + new_cols.append(new_name) + date_cols.update(old_names) + + if isinstance(data_dict, DataFrame): + data_dict = concat([DataFrame(new_data), data_dict], axis=1, copy=False) + else: + data_dict.update(new_data) + new_cols.extend(columns) + + if not keep_date_col: + for c in list(date_cols): + data_dict.pop(c) + new_cols.remove(c) + + return data_dict, new_cols + + +def _try_convert_dates( + parser: Callable, colspec, data_dict, columns, target_name: str | None = None +): + colset = set(columns) + colnames = [] + + for c in colspec: + if c in colset: + colnames.append(c) + elif isinstance(c, int) and c not in columns: + colnames.append(columns[c]) + else: + colnames.append(c) + + new_name: tuple | str + if all(isinstance(x, tuple) for x in colnames): + new_name = tuple(map("_".join, zip(*colnames))) + else: + new_name = "_".join([str(x) for x in colnames]) + to_parse = [np.asarray(data_dict[c]) for c in colnames if c in data_dict] + + new_col = parser(*to_parse, col=new_name if target_name is None else target_name) + return new_name, new_col, colnames + + +def _get_na_values(col, na_values, na_fvalues, keep_default_na: bool): + """ + Get the NaN values for a given column. + + Parameters + ---------- + col : str + The name of the column. + na_values : array-like, dict + The object listing the NaN values as strings. + na_fvalues : array-like, dict + The object listing the NaN values as floats. + keep_default_na : bool + If `na_values` is a dict, and the column is not mapped in the + dictionary, whether to return the default NaN values or the empty set. + + Returns + ------- + nan_tuple : A length-two tuple composed of + + 1) na_values : the string NaN values for that column. + 2) na_fvalues : the float NaN values for that column. + """ + if isinstance(na_values, dict): + if col in na_values: + return na_values[col], na_fvalues[col] + else: + if keep_default_na: + return STR_NA_VALUES, set() + + return set(), set() + else: + return na_values, na_fvalues + + +def _validate_parse_dates_arg(parse_dates): + """ + Check whether or not the 'parse_dates' parameter + is a non-boolean scalar. Raises a ValueError if + that is the case. + """ + msg = ( + "Only booleans, lists, and dictionaries are accepted " + "for the 'parse_dates' parameter" + ) + + if not ( + parse_dates is None + or lib.is_bool(parse_dates) + or isinstance(parse_dates, (list, dict)) + ): + raise TypeError(msg) + + return parse_dates + + +def is_index_col(col) -> bool: + return col is not None and col is not False diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/parsers/c_parser_wrapper.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/parsers/c_parser_wrapper.py new file mode 100644 index 0000000000000000000000000000000000000000..0cd788c5e57399597e3fe4ee1b1bf2af4bffd74b --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/parsers/c_parser_wrapper.py @@ -0,0 +1,410 @@ +from __future__ import annotations + +from collections import defaultdict +from typing import TYPE_CHECKING +import warnings + +import numpy as np + +from pandas._libs import ( + lib, + parsers, +) +from pandas.compat._optional import import_optional_dependency +from pandas.errors import DtypeWarning +from pandas.util._exceptions import find_stack_level + +from pandas.core.dtypes.common import pandas_dtype +from pandas.core.dtypes.concat import ( + concat_compat, + union_categoricals, +) +from pandas.core.dtypes.dtypes import CategoricalDtype + +from pandas.core.indexes.api import ensure_index_from_sequences + +from pandas.io.common import ( + dedup_names, + is_potential_multi_index, +) +from pandas.io.parsers.base_parser import ( + ParserBase, + ParserError, + is_index_col, +) + +if TYPE_CHECKING: + from collections.abc import ( + Hashable, + Mapping, + Sequence, + ) + + from pandas._typing import ( + ArrayLike, + DtypeArg, + DtypeObj, + ReadCsvBuffer, + ) + + from pandas import ( + Index, + MultiIndex, + ) + + +class CParserWrapper(ParserBase): + low_memory: bool + _reader: parsers.TextReader + + def __init__(self, src: ReadCsvBuffer[str], **kwds) -> None: + super().__init__(kwds) + self.kwds = kwds + kwds = kwds.copy() + + self.low_memory = kwds.pop("low_memory", False) + + # #2442 + # error: Cannot determine type of 'index_col' + kwds["allow_leading_cols"] = ( + self.index_col is not False # type: ignore[has-type] + ) + + # GH20529, validate usecol arg before TextReader + kwds["usecols"] = self.usecols + + # Have to pass int, would break tests using TextReader directly otherwise :( + kwds["on_bad_lines"] = self.on_bad_lines.value + + for key in ( + "storage_options", + "encoding", + "memory_map", + "compression", + ): + kwds.pop(key, None) + + kwds["dtype"] = ensure_dtype_objs(kwds.get("dtype", None)) + if "dtype_backend" not in kwds or kwds["dtype_backend"] is lib.no_default: + kwds["dtype_backend"] = "numpy" + if kwds["dtype_backend"] == "pyarrow": + # Fail here loudly instead of in cython after reading + import_optional_dependency("pyarrow") + self._reader = parsers.TextReader(src, **kwds) + + self.unnamed_cols = self._reader.unnamed_cols + + # error: Cannot determine type of 'names' + passed_names = self.names is None # type: ignore[has-type] + + if self._reader.header is None: + self.names = None + else: + # error: Cannot determine type of 'names' + # error: Cannot determine type of 'index_names' + ( + self.names, # type: ignore[has-type] + self.index_names, + self.col_names, + passed_names, + ) = self._extract_multi_indexer_columns( + self._reader.header, + self.index_names, # type: ignore[has-type] + passed_names, + ) + + # error: Cannot determine type of 'names' + if self.names is None: # type: ignore[has-type] + self.names = list(range(self._reader.table_width)) + + # gh-9755 + # + # need to set orig_names here first + # so that proper indexing can be done + # with _set_noconvert_columns + # + # once names has been filtered, we will + # then set orig_names again to names + # error: Cannot determine type of 'names' + self.orig_names = self.names[:] # type: ignore[has-type] + + if self.usecols: + usecols = self._evaluate_usecols(self.usecols, self.orig_names) + + # GH 14671 + # assert for mypy, orig_names is List or None, None would error in issubset + assert self.orig_names is not None + if self.usecols_dtype == "string" and not set(usecols).issubset( + self.orig_names + ): + self._validate_usecols_names(usecols, self.orig_names) + + # error: Cannot determine type of 'names' + if len(self.names) > len(usecols): # type: ignore[has-type] + # error: Cannot determine type of 'names' + self.names = [ # type: ignore[has-type] + n + # error: Cannot determine type of 'names' + for i, n in enumerate(self.names) # type: ignore[has-type] + if (i in usecols or n in usecols) + ] + + # error: Cannot determine type of 'names' + if len(self.names) < len(usecols): # type: ignore[has-type] + # error: Cannot determine type of 'names' + self._validate_usecols_names( + usecols, + self.names, # type: ignore[has-type] + ) + + # error: Cannot determine type of 'names' + self._validate_parse_dates_presence(self.names) # type: ignore[has-type] + self._set_noconvert_columns() + + # error: Cannot determine type of 'names' + self.orig_names = self.names # type: ignore[has-type] + + if not self._has_complex_date_col: + # error: Cannot determine type of 'index_col' + if self._reader.leading_cols == 0 and is_index_col( + self.index_col # type: ignore[has-type] + ): + self._name_processed = True + ( + index_names, + # error: Cannot determine type of 'names' + self.names, # type: ignore[has-type] + self.index_col, + ) = self._clean_index_names( + # error: Cannot determine type of 'names' + self.names, # type: ignore[has-type] + # error: Cannot determine type of 'index_col' + self.index_col, # type: ignore[has-type] + ) + + if self.index_names is None: + self.index_names = index_names + + if self._reader.header is None and not passed_names: + assert self.index_names is not None + self.index_names = [None] * len(self.index_names) + + self._implicit_index = self._reader.leading_cols > 0 + + def close(self) -> None: + # close handles opened by C parser + try: + self._reader.close() + except ValueError: + pass + + def _set_noconvert_columns(self) -> None: + """ + Set the columns that should not undergo dtype conversions. + + Currently, any column that is involved with date parsing will not + undergo such conversions. + """ + assert self.orig_names is not None + # error: Cannot determine type of 'names' + + # much faster than using orig_names.index(x) xref GH#44106 + names_dict = {x: i for i, x in enumerate(self.orig_names)} + col_indices = [names_dict[x] for x in self.names] # type: ignore[has-type] + # error: Cannot determine type of 'names' + noconvert_columns = self._set_noconvert_dtype_columns( + col_indices, + self.names, # type: ignore[has-type] + ) + for col in noconvert_columns: + self._reader.set_noconvert(col) + + def read( + self, + nrows: int | None = None, + ) -> tuple[ + Index | MultiIndex | None, + Sequence[Hashable] | MultiIndex, + Mapping[Hashable, ArrayLike], + ]: + index: Index | MultiIndex | None + column_names: Sequence[Hashable] | MultiIndex + try: + if self.low_memory: + chunks = self._reader.read_low_memory(nrows) + # destructive to chunks + data = _concatenate_chunks(chunks) + + else: + data = self._reader.read(nrows) + except StopIteration: + if self._first_chunk: + self._first_chunk = False + names = dedup_names( + self.orig_names, + is_potential_multi_index(self.orig_names, self.index_col), + ) + index, columns, col_dict = self._get_empty_meta( + names, + dtype=self.dtype, + ) + columns = self._maybe_make_multi_index_columns(columns, self.col_names) + + if self.usecols is not None: + columns = self._filter_usecols(columns) + + col_dict = {k: v for k, v in col_dict.items() if k in columns} + + return index, columns, col_dict + + else: + self.close() + raise + + # Done with first read, next time raise StopIteration + self._first_chunk = False + + # error: Cannot determine type of 'names' + names = self.names # type: ignore[has-type] + + if self._reader.leading_cols: + if self._has_complex_date_col: + raise NotImplementedError("file structure not yet supported") + + # implicit index, no index names + arrays = [] + + if self.index_col and self._reader.leading_cols != len(self.index_col): + raise ParserError( + "Could not construct index. Requested to use " + f"{len(self.index_col)} number of columns, but " + f"{self._reader.leading_cols} left to parse." + ) + + for i in range(self._reader.leading_cols): + if self.index_col is None: + values = data.pop(i) + else: + values = data.pop(self.index_col[i]) + + values = self._maybe_parse_dates(values, i, try_parse_dates=True) + arrays.append(values) + + index = ensure_index_from_sequences(arrays) + + if self.usecols is not None: + names = self._filter_usecols(names) + + names = dedup_names(names, is_potential_multi_index(names, self.index_col)) + + # rename dict keys + data_tups = sorted(data.items()) + data = {k: v for k, (i, v) in zip(names, data_tups)} + + column_names, date_data = self._do_date_conversions(names, data) + + # maybe create a mi on the columns + column_names = self._maybe_make_multi_index_columns( + column_names, self.col_names + ) + + else: + # rename dict keys + data_tups = sorted(data.items()) + + # ugh, mutation + + # assert for mypy, orig_names is List or None, None would error in list(...) + assert self.orig_names is not None + names = list(self.orig_names) + names = dedup_names(names, is_potential_multi_index(names, self.index_col)) + + if self.usecols is not None: + names = self._filter_usecols(names) + + # columns as list + alldata = [x[1] for x in data_tups] + if self.usecols is None: + self._check_data_length(names, alldata) + + data = {k: v for k, (i, v) in zip(names, data_tups)} + + names, date_data = self._do_date_conversions(names, data) + index, column_names = self._make_index(date_data, alldata, names) + + return index, column_names, date_data + + def _filter_usecols(self, names: Sequence[Hashable]) -> Sequence[Hashable]: + # hackish + usecols = self._evaluate_usecols(self.usecols, names) + if usecols is not None and len(names) != len(usecols): + names = [ + name for i, name in enumerate(names) if i in usecols or name in usecols + ] + return names + + def _maybe_parse_dates(self, values, index: int, try_parse_dates: bool = True): + if try_parse_dates and self._should_parse_dates(index): + values = self._date_conv( + values, + col=self.index_names[index] if self.index_names is not None else None, + ) + return values + + +def _concatenate_chunks(chunks: list[dict[int, ArrayLike]]) -> dict: + """ + Concatenate chunks of data read with low_memory=True. + + The tricky part is handling Categoricals, where different chunks + may have different inferred categories. + """ + names = list(chunks[0].keys()) + warning_columns = [] + + result: dict = {} + for name in names: + arrs = [chunk.pop(name) for chunk in chunks] + # Check each arr for consistent types. + dtypes = {a.dtype for a in arrs} + non_cat_dtypes = {x for x in dtypes if not isinstance(x, CategoricalDtype)} + + dtype = dtypes.pop() + if isinstance(dtype, CategoricalDtype): + result[name] = union_categoricals(arrs, sort_categories=False) + else: + result[name] = concat_compat(arrs) + if len(non_cat_dtypes) > 1 and result[name].dtype == np.dtype(object): + warning_columns.append(str(name)) + + if warning_columns: + warning_names = ",".join(warning_columns) + warning_message = " ".join( + [ + f"Columns ({warning_names}) have mixed types. " + f"Specify dtype option on import or set low_memory=False." + ] + ) + warnings.warn(warning_message, DtypeWarning, stacklevel=find_stack_level()) + return result + + +def ensure_dtype_objs( + dtype: DtypeArg | dict[Hashable, DtypeArg] | None +) -> DtypeObj | dict[Hashable, DtypeObj] | None: + """ + Ensure we have either None, a dtype object, or a dictionary mapping to + dtype objects. + """ + if isinstance(dtype, defaultdict): + # "None" not callable [misc] + default_dtype = pandas_dtype(dtype.default_factory()) # type: ignore[misc] + dtype_converted: defaultdict = defaultdict(lambda: default_dtype) + for key in dtype.keys(): + dtype_converted[key] = pandas_dtype(dtype[key]) + return dtype_converted + elif isinstance(dtype, dict): + return {k: pandas_dtype(dtype[k]) for k in dtype} + elif dtype is not None: + return pandas_dtype(dtype) + return dtype diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/parsers/python_parser.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/parsers/python_parser.py new file mode 100644 index 0000000000000000000000000000000000000000..79e7554a5744cf439a65e9fd1e18782a0fa71548 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/parsers/python_parser.py @@ -0,0 +1,1387 @@ +from __future__ import annotations + +from collections import ( + abc, + defaultdict, +) +from collections.abc import ( + Hashable, + Iterator, + Mapping, + Sequence, +) +import csv +from io import StringIO +import re +from typing import ( + IO, + TYPE_CHECKING, + DefaultDict, + Literal, + cast, +) +import warnings + +import numpy as np + +from pandas._libs import lib +from pandas.errors import ( + EmptyDataError, + ParserError, + ParserWarning, +) +from pandas.util._decorators import cache_readonly +from pandas.util._exceptions import find_stack_level + +from pandas.core.dtypes.common import ( + is_bool_dtype, + is_integer, + is_numeric_dtype, +) +from pandas.core.dtypes.inference import is_dict_like + +from pandas.io.common import ( + dedup_names, + is_potential_multi_index, +) +from pandas.io.parsers.base_parser import ( + ParserBase, + parser_defaults, +) + +if TYPE_CHECKING: + from pandas._typing import ( + ArrayLike, + ReadCsvBuffer, + Scalar, + ) + + from pandas import ( + Index, + MultiIndex, + ) + +# BOM character (byte order mark) +# This exists at the beginning of a file to indicate endianness +# of a file (stream). Unfortunately, this marker screws up parsing, +# so we need to remove it if we see it. +_BOM = "\ufeff" + + +class PythonParser(ParserBase): + _no_thousands_columns: set[int] + + def __init__(self, f: ReadCsvBuffer[str] | list, **kwds) -> None: + """ + Workhorse function for processing nested list into DataFrame + """ + super().__init__(kwds) + + self.data: Iterator[str] | None = None + self.buf: list = [] + self.pos = 0 + self.line_pos = 0 + + self.skiprows = kwds["skiprows"] + + if callable(self.skiprows): + self.skipfunc = self.skiprows + else: + self.skipfunc = lambda x: x in self.skiprows + + self.skipfooter = _validate_skipfooter_arg(kwds["skipfooter"]) + self.delimiter = kwds["delimiter"] + + self.quotechar = kwds["quotechar"] + if isinstance(self.quotechar, str): + self.quotechar = str(self.quotechar) + + self.escapechar = kwds["escapechar"] + self.doublequote = kwds["doublequote"] + self.skipinitialspace = kwds["skipinitialspace"] + self.lineterminator = kwds["lineterminator"] + self.quoting = kwds["quoting"] + self.skip_blank_lines = kwds["skip_blank_lines"] + + self.has_index_names = False + if "has_index_names" in kwds: + self.has_index_names = kwds["has_index_names"] + + self.verbose = kwds["verbose"] + + self.thousands = kwds["thousands"] + self.decimal = kwds["decimal"] + + self.comment = kwds["comment"] + + # Set self.data to something that can read lines. + if isinstance(f, list): + # read_excel: f is a list + self.data = cast(Iterator[str], f) + else: + assert hasattr(f, "readline") + self.data = self._make_reader(f) + + # Get columns in two steps: infer from data, then + # infer column indices from self.usecols if it is specified. + self._col_indices: list[int] | None = None + columns: list[list[Scalar | None]] + ( + columns, + self.num_original_columns, + self.unnamed_cols, + ) = self._infer_columns() + + # Now self.columns has the set of columns that we will process. + # The original set is stored in self.original_columns. + # error: Cannot determine type of 'index_names' + ( + self.columns, + self.index_names, + self.col_names, + _, + ) = self._extract_multi_indexer_columns( + columns, + self.index_names, # type: ignore[has-type] + ) + + # get popped off for index + self.orig_names: list[Hashable] = list(self.columns) + + # needs to be cleaned/refactored + # multiple date column thing turning into a real spaghetti factory + + if not self._has_complex_date_col: + (index_names, self.orig_names, self.columns) = self._get_index_name() + self._name_processed = True + if self.index_names is None: + self.index_names = index_names + + if self._col_indices is None: + self._col_indices = list(range(len(self.columns))) + + self._parse_date_cols = self._validate_parse_dates_presence(self.columns) + self._no_thousands_columns = self._set_no_thousand_columns() + + if len(self.decimal) != 1: + raise ValueError("Only length-1 decimal markers supported") + + @cache_readonly + def num(self) -> re.Pattern: + decimal = re.escape(self.decimal) + if self.thousands is None: + regex = rf"^[\-\+]?[0-9]*({decimal}[0-9]*)?([0-9]?(E|e)\-?[0-9]+)?$" + else: + thousands = re.escape(self.thousands) + regex = ( + rf"^[\-\+]?([0-9]+{thousands}|[0-9])*({decimal}[0-9]*)?" + rf"([0-9]?(E|e)\-?[0-9]+)?$" + ) + return re.compile(regex) + + def _make_reader(self, f: IO[str] | ReadCsvBuffer[str]): + sep = self.delimiter + + if sep is None or len(sep) == 1: + if self.lineterminator: + raise ValueError( + "Custom line terminators not supported in python parser (yet)" + ) + + class MyDialect(csv.Dialect): + delimiter = self.delimiter + quotechar = self.quotechar + escapechar = self.escapechar + doublequote = self.doublequote + skipinitialspace = self.skipinitialspace + quoting = self.quoting + lineterminator = "\n" + + dia = MyDialect + + if sep is not None: + dia.delimiter = sep + else: + # attempt to sniff the delimiter from the first valid line, + # i.e. no comment line and not in skiprows + line = f.readline() + lines = self._check_comments([[line]])[0] + while self.skipfunc(self.pos) or not lines: + self.pos += 1 + line = f.readline() + lines = self._check_comments([[line]])[0] + lines_str = cast(list[str], lines) + + # since `line` was a string, lines will be a list containing + # only a single string + line = lines_str[0] + + self.pos += 1 + self.line_pos += 1 + sniffed = csv.Sniffer().sniff(line) + dia.delimiter = sniffed.delimiter + + # Note: encoding is irrelevant here + line_rdr = csv.reader(StringIO(line), dialect=dia) + self.buf.extend(list(line_rdr)) + + # Note: encoding is irrelevant here + reader = csv.reader(f, dialect=dia, strict=True) + + else: + + def _read(): + line = f.readline() + pat = re.compile(sep) + + yield pat.split(line.strip()) + + for line in f: + yield pat.split(line.strip()) + + reader = _read() + + return reader + + def read( + self, rows: int | None = None + ) -> tuple[ + Index | None, Sequence[Hashable] | MultiIndex, Mapping[Hashable, ArrayLike] + ]: + try: + content = self._get_lines(rows) + except StopIteration: + if self._first_chunk: + content = [] + else: + self.close() + raise + + # done with first read, next time raise StopIteration + self._first_chunk = False + + columns: Sequence[Hashable] = list(self.orig_names) + if not len(content): # pragma: no cover + # DataFrame with the right metadata, even though it's length 0 + # error: Cannot determine type of 'index_col' + names = dedup_names( + self.orig_names, + is_potential_multi_index( + self.orig_names, + self.index_col, # type: ignore[has-type] + ), + ) + index, columns, col_dict = self._get_empty_meta( + names, + self.dtype, + ) + conv_columns = self._maybe_make_multi_index_columns(columns, self.col_names) + return index, conv_columns, col_dict + + # handle new style for names in index + count_empty_content_vals = count_empty_vals(content[0]) + indexnamerow = None + if self.has_index_names and count_empty_content_vals == len(columns): + indexnamerow = content[0] + content = content[1:] + + alldata = self._rows_to_cols(content) + data, columns = self._exclude_implicit_index(alldata) + + conv_data = self._convert_data(data) + columns, conv_data = self._do_date_conversions(columns, conv_data) + + index, result_columns = self._make_index( + conv_data, alldata, columns, indexnamerow + ) + + return index, result_columns, conv_data + + def _exclude_implicit_index( + self, + alldata: list[np.ndarray], + ) -> tuple[Mapping[Hashable, np.ndarray], Sequence[Hashable]]: + # error: Cannot determine type of 'index_col' + names = dedup_names( + self.orig_names, + is_potential_multi_index( + self.orig_names, + self.index_col, # type: ignore[has-type] + ), + ) + + offset = 0 + if self._implicit_index: + # error: Cannot determine type of 'index_col' + offset = len(self.index_col) # type: ignore[has-type] + + len_alldata = len(alldata) + self._check_data_length(names, alldata) + + return { + name: alldata[i + offset] for i, name in enumerate(names) if i < len_alldata + }, names + + # legacy + def get_chunk( + self, size: int | None = None + ) -> tuple[ + Index | None, Sequence[Hashable] | MultiIndex, Mapping[Hashable, ArrayLike] + ]: + if size is None: + # error: "PythonParser" has no attribute "chunksize" + size = self.chunksize # type: ignore[attr-defined] + return self.read(rows=size) + + def _convert_data( + self, + data: Mapping[Hashable, np.ndarray], + ) -> Mapping[Hashable, ArrayLike]: + # apply converters + clean_conv = self._clean_mapping(self.converters) + clean_dtypes = self._clean_mapping(self.dtype) + + # Apply NA values. + clean_na_values = {} + clean_na_fvalues = {} + + if isinstance(self.na_values, dict): + for col in self.na_values: + na_value = self.na_values[col] + na_fvalue = self.na_fvalues[col] + + if isinstance(col, int) and col not in self.orig_names: + col = self.orig_names[col] + + clean_na_values[col] = na_value + clean_na_fvalues[col] = na_fvalue + else: + clean_na_values = self.na_values + clean_na_fvalues = self.na_fvalues + + return self._convert_to_ndarrays( + data, + clean_na_values, + clean_na_fvalues, + self.verbose, + clean_conv, + clean_dtypes, + ) + + @cache_readonly + def _have_mi_columns(self) -> bool: + if self.header is None: + return False + + header = self.header + if isinstance(header, (list, tuple, np.ndarray)): + return len(header) > 1 + else: + return False + + def _infer_columns( + self, + ) -> tuple[list[list[Scalar | None]], int, set[Scalar | None]]: + names = self.names + num_original_columns = 0 + clear_buffer = True + unnamed_cols: set[Scalar | None] = set() + + if self.header is not None: + header = self.header + have_mi_columns = self._have_mi_columns + + if isinstance(header, (list, tuple, np.ndarray)): + # we have a mi columns, so read an extra line + if have_mi_columns: + header = list(header) + [header[-1] + 1] + else: + header = [header] + + columns: list[list[Scalar | None]] = [] + for level, hr in enumerate(header): + try: + line = self._buffered_line() + + while self.line_pos <= hr: + line = self._next_line() + + except StopIteration as err: + if 0 < self.line_pos <= hr and ( + not have_mi_columns or hr != header[-1] + ): + # If no rows we want to raise a different message and if + # we have mi columns, the last line is not part of the header + joi = list(map(str, header[:-1] if have_mi_columns else header)) + msg = f"[{','.join(joi)}], len of {len(joi)}, " + raise ValueError( + f"Passed header={msg}" + f"but only {self.line_pos} lines in file" + ) from err + + # We have an empty file, so check + # if columns are provided. That will + # serve as the 'line' for parsing + if have_mi_columns and hr > 0: + if clear_buffer: + self._clear_buffer() + columns.append([None] * len(columns[-1])) + return columns, num_original_columns, unnamed_cols + + if not self.names: + raise EmptyDataError("No columns to parse from file") from err + + line = self.names[:] + + this_columns: list[Scalar | None] = [] + this_unnamed_cols = [] + + for i, c in enumerate(line): + if c == "": + if have_mi_columns: + col_name = f"Unnamed: {i}_level_{level}" + else: + col_name = f"Unnamed: {i}" + + this_unnamed_cols.append(i) + this_columns.append(col_name) + else: + this_columns.append(c) + + if not have_mi_columns: + counts: DefaultDict = defaultdict(int) + # Ensure that regular columns are used before unnamed ones + # to keep given names and mangle unnamed columns + col_loop_order = [ + i + for i in range(len(this_columns)) + if i not in this_unnamed_cols + ] + this_unnamed_cols + + # TODO: Use pandas.io.common.dedup_names instead (see #50371) + for i in col_loop_order: + col = this_columns[i] + old_col = col + cur_count = counts[col] + + if cur_count > 0: + while cur_count > 0: + counts[old_col] = cur_count + 1 + col = f"{old_col}.{cur_count}" + if col in this_columns: + cur_count += 1 + else: + cur_count = counts[col] + + if ( + self.dtype is not None + and is_dict_like(self.dtype) + and self.dtype.get(old_col) is not None + and self.dtype.get(col) is None + ): + self.dtype.update({col: self.dtype.get(old_col)}) + this_columns[i] = col + counts[col] = cur_count + 1 + elif have_mi_columns: + # if we have grabbed an extra line, but its not in our + # format so save in the buffer, and create an blank extra + # line for the rest of the parsing code + if hr == header[-1]: + lc = len(this_columns) + # error: Cannot determine type of 'index_col' + sic = self.index_col # type: ignore[has-type] + ic = len(sic) if sic is not None else 0 + unnamed_count = len(this_unnamed_cols) + + # if wrong number of blanks or no index, not our format + if (lc != unnamed_count and lc - ic > unnamed_count) or ic == 0: + clear_buffer = False + this_columns = [None] * lc + self.buf = [self.buf[-1]] + + columns.append(this_columns) + unnamed_cols.update({this_columns[i] for i in this_unnamed_cols}) + + if len(columns) == 1: + num_original_columns = len(this_columns) + + if clear_buffer: + self._clear_buffer() + + first_line: list[Scalar] | None + if names is not None: + # Read first row after header to check if data are longer + try: + first_line = self._next_line() + except StopIteration: + first_line = None + + len_first_data_row = 0 if first_line is None else len(first_line) + + if len(names) > len(columns[0]) and len(names) > len_first_data_row: + raise ValueError( + "Number of passed names did not match " + "number of header fields in the file" + ) + if len(columns) > 1: + raise TypeError("Cannot pass names with multi-index columns") + + if self.usecols is not None: + # Set _use_cols. We don't store columns because they are + # overwritten. + self._handle_usecols(columns, names, num_original_columns) + else: + num_original_columns = len(names) + if self._col_indices is not None and len(names) != len( + self._col_indices + ): + columns = [[names[i] for i in sorted(self._col_indices)]] + else: + columns = [names] + else: + columns = self._handle_usecols( + columns, columns[0], num_original_columns + ) + else: + ncols = len(self._header_line) + num_original_columns = ncols + + if not names: + columns = [list(range(ncols))] + columns = self._handle_usecols(columns, columns[0], ncols) + elif self.usecols is None or len(names) >= ncols: + columns = self._handle_usecols([names], names, ncols) + num_original_columns = len(names) + elif not callable(self.usecols) and len(names) != len(self.usecols): + raise ValueError( + "Number of passed names did not match number of " + "header fields in the file" + ) + else: + # Ignore output but set used columns. + columns = [names] + self._handle_usecols(columns, columns[0], ncols) + + return columns, num_original_columns, unnamed_cols + + @cache_readonly + def _header_line(self): + # Store line for reuse in _get_index_name + if self.header is not None: + return None + + try: + line = self._buffered_line() + except StopIteration as err: + if not self.names: + raise EmptyDataError("No columns to parse from file") from err + + line = self.names[:] + return line + + def _handle_usecols( + self, + columns: list[list[Scalar | None]], + usecols_key: list[Scalar | None], + num_original_columns: int, + ) -> list[list[Scalar | None]]: + """ + Sets self._col_indices + + usecols_key is used if there are string usecols. + """ + col_indices: set[int] | list[int] + if self.usecols is not None: + if callable(self.usecols): + col_indices = self._evaluate_usecols(self.usecols, usecols_key) + elif any(isinstance(u, str) for u in self.usecols): + if len(columns) > 1: + raise ValueError( + "If using multiple headers, usecols must be integers." + ) + col_indices = [] + + for col in self.usecols: + if isinstance(col, str): + try: + col_indices.append(usecols_key.index(col)) + except ValueError: + self._validate_usecols_names(self.usecols, usecols_key) + else: + col_indices.append(col) + else: + missing_usecols = [ + col for col in self.usecols if col >= num_original_columns + ] + if missing_usecols: + raise ParserError( + "Defining usecols with out-of-bounds indices is not allowed. " + f"{missing_usecols} are out-of-bounds.", + ) + col_indices = self.usecols + + columns = [ + [n for i, n in enumerate(column) if i in col_indices] + for column in columns + ] + self._col_indices = sorted(col_indices) + return columns + + def _buffered_line(self) -> list[Scalar]: + """ + Return a line from buffer, filling buffer if required. + """ + if len(self.buf) > 0: + return self.buf[0] + else: + return self._next_line() + + def _check_for_bom(self, first_row: list[Scalar]) -> list[Scalar]: + """ + Checks whether the file begins with the BOM character. + If it does, remove it. In addition, if there is quoting + in the field subsequent to the BOM, remove it as well + because it technically takes place at the beginning of + the name, not the middle of it. + """ + # first_row will be a list, so we need to check + # that that list is not empty before proceeding. + if not first_row: + return first_row + + # The first element of this row is the one that could have the + # BOM that we want to remove. Check that the first element is a + # string before proceeding. + if not isinstance(first_row[0], str): + return first_row + + # Check that the string is not empty, as that would + # obviously not have a BOM at the start of it. + if not first_row[0]: + return first_row + + # Since the string is non-empty, check that it does + # in fact begin with a BOM. + first_elt = first_row[0][0] + if first_elt != _BOM: + return first_row + + first_row_bom = first_row[0] + new_row: str + + if len(first_row_bom) > 1 and first_row_bom[1] == self.quotechar: + start = 2 + quote = first_row_bom[1] + end = first_row_bom[2:].index(quote) + 2 + + # Extract the data between the quotation marks + new_row = first_row_bom[start:end] + + # Extract any remaining data after the second + # quotation mark. + if len(first_row_bom) > end + 1: + new_row += first_row_bom[end + 1 :] + + else: + # No quotation so just remove BOM from first element + new_row = first_row_bom[1:] + + new_row_list: list[Scalar] = [new_row] + return new_row_list + first_row[1:] + + def _is_line_empty(self, line: list[Scalar]) -> bool: + """ + Check if a line is empty or not. + + Parameters + ---------- + line : str, array-like + The line of data to check. + + Returns + ------- + boolean : Whether or not the line is empty. + """ + return not line or all(not x for x in line) + + def _next_line(self) -> list[Scalar]: + if isinstance(self.data, list): + while self.skipfunc(self.pos): + if self.pos >= len(self.data): + break + self.pos += 1 + + while True: + try: + line = self._check_comments([self.data[self.pos]])[0] + self.pos += 1 + # either uncommented or blank to begin with + if not self.skip_blank_lines and ( + self._is_line_empty(self.data[self.pos - 1]) or line + ): + break + if self.skip_blank_lines: + ret = self._remove_empty_lines([line]) + if ret: + line = ret[0] + break + except IndexError: + raise StopIteration + else: + while self.skipfunc(self.pos): + self.pos += 1 + # assert for mypy, data is Iterator[str] or None, would error in next + assert self.data is not None + next(self.data) + + while True: + orig_line = self._next_iter_line(row_num=self.pos + 1) + self.pos += 1 + + if orig_line is not None: + line = self._check_comments([orig_line])[0] + + if self.skip_blank_lines: + ret = self._remove_empty_lines([line]) + + if ret: + line = ret[0] + break + elif self._is_line_empty(orig_line) or line: + break + + # This was the first line of the file, + # which could contain the BOM at the + # beginning of it. + if self.pos == 1: + line = self._check_for_bom(line) + + self.line_pos += 1 + self.buf.append(line) + return line + + def _alert_malformed(self, msg: str, row_num: int) -> None: + """ + Alert a user about a malformed row, depending on value of + `self.on_bad_lines` enum. + + If `self.on_bad_lines` is ERROR, the alert will be `ParserError`. + If `self.on_bad_lines` is WARN, the alert will be printed out. + + Parameters + ---------- + msg: str + The error message to display. + row_num: int + The row number where the parsing error occurred. + Because this row number is displayed, we 1-index, + even though we 0-index internally. + """ + if self.on_bad_lines == self.BadLineHandleMethod.ERROR: + raise ParserError(msg) + if self.on_bad_lines == self.BadLineHandleMethod.WARN: + warnings.warn( + f"Skipping line {row_num}: {msg}\n", + ParserWarning, + stacklevel=find_stack_level(), + ) + + def _next_iter_line(self, row_num: int) -> list[Scalar] | None: + """ + Wrapper around iterating through `self.data` (CSV source). + + When a CSV error is raised, we check for specific + error messages that allow us to customize the + error message displayed to the user. + + Parameters + ---------- + row_num: int + The row number of the line being parsed. + """ + try: + # assert for mypy, data is Iterator[str] or None, would error in next + assert self.data is not None + line = next(self.data) + # for mypy + assert isinstance(line, list) + return line + except csv.Error as e: + if self.on_bad_lines in ( + self.BadLineHandleMethod.ERROR, + self.BadLineHandleMethod.WARN, + ): + msg = str(e) + + if "NULL byte" in msg or "line contains NUL" in msg: + msg = ( + "NULL byte detected. This byte " + "cannot be processed in Python's " + "native csv library at the moment, " + "so please pass in engine='c' instead" + ) + + if self.skipfooter > 0: + reason = ( + "Error could possibly be due to " + "parsing errors in the skipped footer rows " + "(the skipfooter keyword is only applied " + "after Python's csv library has parsed " + "all rows)." + ) + msg += ". " + reason + + self._alert_malformed(msg, row_num) + return None + + def _check_comments(self, lines: list[list[Scalar]]) -> list[list[Scalar]]: + if self.comment is None: + return lines + ret = [] + for line in lines: + rl = [] + for x in line: + if ( + not isinstance(x, str) + or self.comment not in x + or x in self.na_values + ): + rl.append(x) + else: + x = x[: x.find(self.comment)] + if len(x) > 0: + rl.append(x) + break + ret.append(rl) + return ret + + def _remove_empty_lines(self, lines: list[list[Scalar]]) -> list[list[Scalar]]: + """ + Iterate through the lines and remove any that are + either empty or contain only one whitespace value + + Parameters + ---------- + lines : list of list of Scalars + The array of lines that we are to filter. + + Returns + ------- + filtered_lines : list of list of Scalars + The same array of lines with the "empty" ones removed. + """ + # Remove empty lines and lines with only one whitespace value + ret = [ + line + for line in lines + if ( + len(line) > 1 + or len(line) == 1 + and (not isinstance(line[0], str) or line[0].strip()) + ) + ] + return ret + + def _check_thousands(self, lines: list[list[Scalar]]) -> list[list[Scalar]]: + if self.thousands is None: + return lines + + return self._search_replace_num_columns( + lines=lines, search=self.thousands, replace="" + ) + + def _search_replace_num_columns( + self, lines: list[list[Scalar]], search: str, replace: str + ) -> list[list[Scalar]]: + ret = [] + for line in lines: + rl = [] + for i, x in enumerate(line): + if ( + not isinstance(x, str) + or search not in x + or i in self._no_thousands_columns + or not self.num.search(x.strip()) + ): + rl.append(x) + else: + rl.append(x.replace(search, replace)) + ret.append(rl) + return ret + + def _check_decimal(self, lines: list[list[Scalar]]) -> list[list[Scalar]]: + if self.decimal == parser_defaults["decimal"]: + return lines + + return self._search_replace_num_columns( + lines=lines, search=self.decimal, replace="." + ) + + def _clear_buffer(self) -> None: + self.buf = [] + + def _get_index_name( + self, + ) -> tuple[Sequence[Hashable] | None, list[Hashable], list[Hashable]]: + """ + Try several cases to get lines: + + 0) There are headers on row 0 and row 1 and their + total summed lengths equals the length of the next line. + Treat row 0 as columns and row 1 as indices + 1) Look for implicit index: there are more columns + on row 1 than row 0. If this is true, assume that row + 1 lists index columns and row 0 lists normal columns. + 2) Get index from the columns if it was listed. + """ + columns: Sequence[Hashable] = self.orig_names + orig_names = list(columns) + columns = list(columns) + + line: list[Scalar] | None + if self._header_line is not None: + line = self._header_line + else: + try: + line = self._next_line() + except StopIteration: + line = None + + next_line: list[Scalar] | None + try: + next_line = self._next_line() + except StopIteration: + next_line = None + + # implicitly index_col=0 b/c 1 fewer column names + implicit_first_cols = 0 + if line is not None: + # leave it 0, #2442 + # Case 1 + # error: Cannot determine type of 'index_col' + index_col = self.index_col # type: ignore[has-type] + if index_col is not False: + implicit_first_cols = len(line) - self.num_original_columns + + # Case 0 + if ( + next_line is not None + and self.header is not None + and index_col is not False + ): + if len(next_line) == len(line) + self.num_original_columns: + # column and index names on diff rows + self.index_col = list(range(len(line))) + self.buf = self.buf[1:] + + for c in reversed(line): + columns.insert(0, c) + + # Update list of original names to include all indices. + orig_names = list(columns) + self.num_original_columns = len(columns) + return line, orig_names, columns + + if implicit_first_cols > 0: + # Case 1 + self._implicit_index = True + if self.index_col is None: + self.index_col = list(range(implicit_first_cols)) + + index_name = None + + else: + # Case 2 + (index_name, _, self.index_col) = self._clean_index_names( + columns, self.index_col + ) + + return index_name, orig_names, columns + + def _rows_to_cols(self, content: list[list[Scalar]]) -> list[np.ndarray]: + col_len = self.num_original_columns + + if self._implicit_index: + col_len += len(self.index_col) + + max_len = max(len(row) for row in content) + + # Check that there are no rows with too many + # elements in their row (rows with too few + # elements are padded with NaN). + # error: Non-overlapping identity check (left operand type: "List[int]", + # right operand type: "Literal[False]") + if ( + max_len > col_len + and self.index_col is not False # type: ignore[comparison-overlap] + and self.usecols is None + ): + footers = self.skipfooter if self.skipfooter else 0 + bad_lines = [] + + iter_content = enumerate(content) + content_len = len(content) + content = [] + + for i, _content in iter_content: + actual_len = len(_content) + + if actual_len > col_len: + if callable(self.on_bad_lines): + new_l = self.on_bad_lines(_content) + if new_l is not None: + content.append(new_l) + elif self.on_bad_lines in ( + self.BadLineHandleMethod.ERROR, + self.BadLineHandleMethod.WARN, + ): + row_num = self.pos - (content_len - i + footers) + bad_lines.append((row_num, actual_len)) + + if self.on_bad_lines == self.BadLineHandleMethod.ERROR: + break + else: + content.append(_content) + + for row_num, actual_len in bad_lines: + msg = ( + f"Expected {col_len} fields in line {row_num + 1}, saw " + f"{actual_len}" + ) + if ( + self.delimiter + and len(self.delimiter) > 1 + and self.quoting != csv.QUOTE_NONE + ): + # see gh-13374 + reason = ( + "Error could possibly be due to quotes being " + "ignored when a multi-char delimiter is used." + ) + msg += ". " + reason + + self._alert_malformed(msg, row_num + 1) + + # see gh-13320 + zipped_content = list(lib.to_object_array(content, min_width=col_len).T) + + if self.usecols: + assert self._col_indices is not None + col_indices = self._col_indices + + if self._implicit_index: + zipped_content = [ + a + for i, a in enumerate(zipped_content) + if ( + i < len(self.index_col) + or i - len(self.index_col) in col_indices + ) + ] + else: + zipped_content = [ + a for i, a in enumerate(zipped_content) if i in col_indices + ] + return zipped_content + + def _get_lines(self, rows: int | None = None) -> list[list[Scalar]]: + lines = self.buf + new_rows = None + + # already fetched some number + if rows is not None: + # we already have the lines in the buffer + if len(self.buf) >= rows: + new_rows, self.buf = self.buf[:rows], self.buf[rows:] + + # need some lines + else: + rows -= len(self.buf) + + if new_rows is None: + if isinstance(self.data, list): + if self.pos > len(self.data): + raise StopIteration + if rows is None: + new_rows = self.data[self.pos :] + new_pos = len(self.data) + else: + new_rows = self.data[self.pos : self.pos + rows] + new_pos = self.pos + rows + + new_rows = self._remove_skipped_rows(new_rows) + lines.extend(new_rows) + self.pos = new_pos + + else: + new_rows = [] + try: + if rows is not None: + row_index = 0 + row_ct = 0 + offset = self.pos if self.pos is not None else 0 + while row_ct < rows: + # assert for mypy, data is Iterator[str] or None, would + # error in next + assert self.data is not None + new_row = next(self.data) + if not self.skipfunc(offset + row_index): + row_ct += 1 + row_index += 1 + new_rows.append(new_row) + + len_new_rows = len(new_rows) + new_rows = self._remove_skipped_rows(new_rows) + lines.extend(new_rows) + else: + rows = 0 + + while True: + next_row = self._next_iter_line(row_num=self.pos + rows + 1) + rows += 1 + + if next_row is not None: + new_rows.append(next_row) + len_new_rows = len(new_rows) + + except StopIteration: + len_new_rows = len(new_rows) + new_rows = self._remove_skipped_rows(new_rows) + lines.extend(new_rows) + if len(lines) == 0: + raise + self.pos += len_new_rows + + self.buf = [] + else: + lines = new_rows + + if self.skipfooter: + lines = lines[: -self.skipfooter] + + lines = self._check_comments(lines) + if self.skip_blank_lines: + lines = self._remove_empty_lines(lines) + lines = self._check_thousands(lines) + return self._check_decimal(lines) + + def _remove_skipped_rows(self, new_rows: list[list[Scalar]]) -> list[list[Scalar]]: + if self.skiprows: + return [ + row for i, row in enumerate(new_rows) if not self.skipfunc(i + self.pos) + ] + return new_rows + + def _set_no_thousand_columns(self) -> set[int]: + no_thousands_columns: set[int] = set() + if self.columns and self.parse_dates: + assert self._col_indices is not None + no_thousands_columns = self._set_noconvert_dtype_columns( + self._col_indices, self.columns + ) + if self.columns and self.dtype: + assert self._col_indices is not None + for i, col in zip(self._col_indices, self.columns): + if not isinstance(self.dtype, dict) and not is_numeric_dtype( + self.dtype + ): + no_thousands_columns.add(i) + if ( + isinstance(self.dtype, dict) + and col in self.dtype + and ( + not is_numeric_dtype(self.dtype[col]) + or is_bool_dtype(self.dtype[col]) + ) + ): + no_thousands_columns.add(i) + return no_thousands_columns + + +class FixedWidthReader(abc.Iterator): + """ + A reader of fixed-width lines. + """ + + def __init__( + self, + f: IO[str] | ReadCsvBuffer[str], + colspecs: list[tuple[int, int]] | Literal["infer"], + delimiter: str | None, + comment: str | None, + skiprows: set[int] | None = None, + infer_nrows: int = 100, + ) -> None: + self.f = f + self.buffer: Iterator | None = None + self.delimiter = "\r\n" + delimiter if delimiter else "\n\r\t " + self.comment = comment + if colspecs == "infer": + self.colspecs = self.detect_colspecs( + infer_nrows=infer_nrows, skiprows=skiprows + ) + else: + self.colspecs = colspecs + + if not isinstance(self.colspecs, (tuple, list)): + raise TypeError( + "column specifications must be a list or tuple, " + f"input was a {type(colspecs).__name__}" + ) + + for colspec in self.colspecs: + if not ( + isinstance(colspec, (tuple, list)) + and len(colspec) == 2 + and isinstance(colspec[0], (int, np.integer, type(None))) + and isinstance(colspec[1], (int, np.integer, type(None))) + ): + raise TypeError( + "Each column specification must be " + "2 element tuple or list of integers" + ) + + def get_rows(self, infer_nrows: int, skiprows: set[int] | None = None) -> list[str]: + """ + Read rows from self.f, skipping as specified. + + We distinguish buffer_rows (the first <= infer_nrows + lines) from the rows returned to detect_colspecs + because it's simpler to leave the other locations + with skiprows logic alone than to modify them to + deal with the fact we skipped some rows here as + well. + + Parameters + ---------- + infer_nrows : int + Number of rows to read from self.f, not counting + rows that are skipped. + skiprows: set, optional + Indices of rows to skip. + + Returns + ------- + detect_rows : list of str + A list containing the rows to read. + + """ + if skiprows is None: + skiprows = set() + buffer_rows = [] + detect_rows = [] + for i, row in enumerate(self.f): + if i not in skiprows: + detect_rows.append(row) + buffer_rows.append(row) + if len(detect_rows) >= infer_nrows: + break + self.buffer = iter(buffer_rows) + return detect_rows + + def detect_colspecs( + self, infer_nrows: int = 100, skiprows: set[int] | None = None + ) -> list[tuple[int, int]]: + # Regex escape the delimiters + delimiters = "".join([rf"\{x}" for x in self.delimiter]) + pattern = re.compile(f"([^{delimiters}]+)") + rows = self.get_rows(infer_nrows, skiprows) + if not rows: + raise EmptyDataError("No rows from which to infer column width") + max_len = max(map(len, rows)) + mask = np.zeros(max_len + 1, dtype=int) + if self.comment is not None: + rows = [row.partition(self.comment)[0] for row in rows] + for row in rows: + for m in pattern.finditer(row): + mask[m.start() : m.end()] = 1 + shifted = np.roll(mask, 1) + shifted[0] = 0 + edges = np.where((mask ^ shifted) == 1)[0] + edge_pairs = list(zip(edges[::2], edges[1::2])) + return edge_pairs + + def __next__(self) -> list[str]: + # Argument 1 to "next" has incompatible type "Union[IO[str], + # ReadCsvBuffer[str]]"; expected "SupportsNext[str]" + if self.buffer is not None: + try: + line = next(self.buffer) + except StopIteration: + self.buffer = None + line = next(self.f) # type: ignore[arg-type] + else: + line = next(self.f) # type: ignore[arg-type] + # Note: 'colspecs' is a sequence of half-open intervals. + return [line[from_:to].strip(self.delimiter) for (from_, to) in self.colspecs] + + +class FixedWidthFieldParser(PythonParser): + """ + Specialization that Converts fixed-width fields into DataFrames. + See PythonParser for details. + """ + + def __init__(self, f: ReadCsvBuffer[str], **kwds) -> None: + # Support iterators, convert to a list. + self.colspecs = kwds.pop("colspecs") + self.infer_nrows = kwds.pop("infer_nrows") + PythonParser.__init__(self, f, **kwds) + + def _make_reader(self, f: IO[str] | ReadCsvBuffer[str]) -> FixedWidthReader: + return FixedWidthReader( + f, + self.colspecs, + self.delimiter, + self.comment, + self.skiprows, + self.infer_nrows, + ) + + def _remove_empty_lines(self, lines: list[list[Scalar]]) -> list[list[Scalar]]: + """ + Returns the list of lines without the empty ones. With fixed-width + fields, empty lines become arrays of empty strings. + + See PythonParser._remove_empty_lines. + """ + return [ + line + for line in lines + if any(not isinstance(e, str) or e.strip() for e in line) + ] + + +def count_empty_vals(vals) -> int: + return sum(1 for v in vals if v == "" or v is None) + + +def _validate_skipfooter_arg(skipfooter: int) -> int: + """ + Validate the 'skipfooter' parameter. + + Checks whether 'skipfooter' is a non-negative integer. + Raises a ValueError if that is not the case. + + Parameters + ---------- + skipfooter : non-negative integer + The number of rows to skip at the end of the file. + + Returns + ------- + validated_skipfooter : non-negative integer + The original input if the validation succeeds. + + Raises + ------ + ValueError : 'skipfooter' was not a non-negative integer. + """ + if not is_integer(skipfooter): + raise ValueError("skipfooter must be an integer") + + if skipfooter < 0: + raise ValueError("skipfooter cannot be negative") + + # Incompatible return value type (got "Union[int, integer[Any]]", expected "int") + return skipfooter # type: ignore[return-value] diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/parsers/readers.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/parsers/readers.py new file mode 100644 index 0000000000000000000000000000000000000000..e04f27b56061030d19081d87439f0461fa53cc76 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/parsers/readers.py @@ -0,0 +1,2383 @@ +""" +Module contains tools for processing files into DataFrames or other objects + +GH#48849 provides a convenient way of deprecating keyword arguments +""" +from __future__ import annotations + +from collections import ( + abc, + defaultdict, +) +import csv +import sys +from textwrap import fill +from typing import ( + IO, + TYPE_CHECKING, + Any, + Callable, + Literal, + NamedTuple, + TypedDict, + overload, +) +import warnings + +import numpy as np + +from pandas._config import using_copy_on_write + +from pandas._libs import lib +from pandas._libs.parsers import STR_NA_VALUES +from pandas.errors import ( + AbstractMethodError, + ParserWarning, +) +from pandas.util._decorators import Appender +from pandas.util._exceptions import find_stack_level +from pandas.util._validators import check_dtype_backend + +from pandas.core.dtypes.common import ( + is_file_like, + is_float, + is_hashable, + is_integer, + is_list_like, + pandas_dtype, +) + +from pandas import Series +from pandas.core.frame import DataFrame +from pandas.core.indexes.api import RangeIndex +from pandas.core.shared_docs import _shared_docs + +from pandas.io.common import ( + IOHandles, + get_handle, + stringify_path, + validate_header_arg, +) +from pandas.io.parsers.arrow_parser_wrapper import ArrowParserWrapper +from pandas.io.parsers.base_parser import ( + ParserBase, + is_index_col, + parser_defaults, +) +from pandas.io.parsers.c_parser_wrapper import CParserWrapper +from pandas.io.parsers.python_parser import ( + FixedWidthFieldParser, + PythonParser, +) + +if TYPE_CHECKING: + from collections.abc import ( + Hashable, + Iterable, + Mapping, + Sequence, + ) + from types import TracebackType + + from pandas._typing import ( + CompressionOptions, + CSVEngine, + DtypeArg, + DtypeBackend, + FilePath, + IndexLabel, + ReadCsvBuffer, + Self, + StorageOptions, + UsecolsArgType, + ) +_doc_read_csv_and_table = ( + r""" +{summary} + +Also supports optionally iterating or breaking of the file +into chunks. + +Additional help can be found in the online docs for +`IO Tools `_. + +Parameters +---------- +filepath_or_buffer : str, path object or file-like object + Any valid string path is acceptable. The string could be a URL. Valid + URL schemes include http, ftp, s3, gs, and file. For file URLs, a host is + expected. A local file could be: file://localhost/path/to/table.csv. + + If you want to pass in a path object, pandas accepts any ``os.PathLike``. + + By file-like object, we refer to objects with a ``read()`` method, such as + a file handle (e.g. via builtin ``open`` function) or ``StringIO``. +sep : str, default {_default_sep} + Character or regex pattern to treat as the delimiter. If ``sep=None``, the + C engine cannot automatically detect + the separator, but the Python parsing engine can, meaning the latter will + be used and automatically detect the separator from only the first valid + row of the file by Python's builtin sniffer tool, ``csv.Sniffer``. + In addition, separators longer than 1 character and different from + ``'\s+'`` will be interpreted as regular expressions and will also force + the use of the Python parsing engine. Note that regex delimiters are prone + to ignoring quoted data. Regex example: ``'\r\t'``. +delimiter : str, optional + Alias for ``sep``. +header : int, Sequence of int, 'infer' or None, default 'infer' + Row number(s) containing column labels and marking the start of the + data (zero-indexed). Default behavior is to infer the column names: if no ``names`` + are passed the behavior is identical to ``header=0`` and column + names are inferred from the first line of the file, if column + names are passed explicitly to ``names`` then the behavior is identical to + ``header=None``. Explicitly pass ``header=0`` to be able to + replace existing names. The header can be a list of integers that + specify row locations for a :class:`~pandas.MultiIndex` on the columns + e.g. ``[0, 1, 3]``. Intervening rows that are not specified will be + skipped (e.g. 2 in this example is skipped). Note that this + parameter ignores commented lines and empty lines if + ``skip_blank_lines=True``, so ``header=0`` denotes the first line of + data rather than the first line of the file. +names : Sequence of Hashable, optional + Sequence of column labels to apply. If the file contains a header row, + then you should explicitly pass ``header=0`` to override the column names. + Duplicates in this list are not allowed. +index_col : Hashable, Sequence of Hashable or False, optional + Column(s) to use as row label(s), denoted either by column labels or column + indices. If a sequence of labels or indices is given, :class:`~pandas.MultiIndex` + will be formed for the row labels. + + Note: ``index_col=False`` can be used to force pandas to *not* use the first + column as the index, e.g., when you have a malformed file with delimiters at + the end of each line. +usecols : Sequence of Hashable or Callable, optional + Subset of columns to select, denoted either by column labels or column indices. + If list-like, all elements must either + be positional (i.e. integer indices into the document columns) or strings + that correspond to column names provided either by the user in ``names`` or + inferred from the document header row(s). If ``names`` are given, the document + header row(s) are not taken into account. For example, a valid list-like + ``usecols`` parameter would be ``[0, 1, 2]`` or ``['foo', 'bar', 'baz']``. + Element order is ignored, so ``usecols=[0, 1]`` is the same as ``[1, 0]``. + To instantiate a :class:`~pandas.DataFrame` from ``data`` with element order + preserved use ``pd.read_csv(data, usecols=['foo', 'bar'])[['foo', 'bar']]`` + for columns in ``['foo', 'bar']`` order or + ``pd.read_csv(data, usecols=['foo', 'bar'])[['bar', 'foo']]`` + for ``['bar', 'foo']`` order. + + If callable, the callable function will be evaluated against the column + names, returning names where the callable function evaluates to ``True``. An + example of a valid callable argument would be ``lambda x: x.upper() in + ['AAA', 'BBB', 'DDD']``. Using this parameter results in much faster + parsing time and lower memory usage. +dtype : dtype or dict of {{Hashable : dtype}}, optional + Data type(s) to apply to either the whole dataset or individual columns. + E.g., ``{{'a': np.float64, 'b': np.int32, 'c': 'Int64'}}`` + Use ``str`` or ``object`` together with suitable ``na_values`` settings + to preserve and not interpret ``dtype``. + If ``converters`` are specified, they will be applied INSTEAD + of ``dtype`` conversion. + + .. versionadded:: 1.5.0 + + Support for ``defaultdict`` was added. Specify a ``defaultdict`` as input where + the default determines the ``dtype`` of the columns which are not explicitly + listed. +engine : {{'c', 'python', 'pyarrow'}}, optional + Parser engine to use. The C and pyarrow engines are faster, while the python engine + is currently more feature-complete. Multithreading is currently only supported by + the pyarrow engine. + + .. versionadded:: 1.4.0 + + The 'pyarrow' engine was added as an *experimental* engine, and some features + are unsupported, or may not work correctly, with this engine. +converters : dict of {{Hashable : Callable}}, optional + Functions for converting values in specified columns. Keys can either + be column labels or column indices. +true_values : list, optional + Values to consider as ``True`` in addition to case-insensitive variants of 'True'. +false_values : list, optional + Values to consider as ``False`` in addition to case-insensitive variants of 'False'. +skipinitialspace : bool, default False + Skip spaces after delimiter. +skiprows : int, list of int or Callable, optional + Line numbers to skip (0-indexed) or number of lines to skip (``int``) + at the start of the file. + + If callable, the callable function will be evaluated against the row + indices, returning ``True`` if the row should be skipped and ``False`` otherwise. + An example of a valid callable argument would be ``lambda x: x in [0, 2]``. +skipfooter : int, default 0 + Number of lines at bottom of file to skip (Unsupported with ``engine='c'``). +nrows : int, optional + Number of rows of file to read. Useful for reading pieces of large files. +na_values : Hashable, Iterable of Hashable or dict of {{Hashable : Iterable}}, optional + Additional strings to recognize as ``NA``/``NaN``. If ``dict`` passed, specific + per-column ``NA`` values. By default the following values are interpreted as + ``NaN``: " """ + + fill('", "'.join(sorted(STR_NA_VALUES)), 70, subsequent_indent=" ") + + """ ". + +keep_default_na : bool, default True + Whether or not to include the default ``NaN`` values when parsing the data. + Depending on whether ``na_values`` is passed in, the behavior is as follows: + + * If ``keep_default_na`` is ``True``, and ``na_values`` are specified, ``na_values`` + is appended to the default ``NaN`` values used for parsing. + * If ``keep_default_na`` is ``True``, and ``na_values`` are not specified, only + the default ``NaN`` values are used for parsing. + * If ``keep_default_na`` is ``False``, and ``na_values`` are specified, only + the ``NaN`` values specified ``na_values`` are used for parsing. + * If ``keep_default_na`` is ``False``, and ``na_values`` are not specified, no + strings will be parsed as ``NaN``. + + Note that if ``na_filter`` is passed in as ``False``, the ``keep_default_na`` and + ``na_values`` parameters will be ignored. +na_filter : bool, default True + Detect missing value markers (empty strings and the value of ``na_values``). In + data without any ``NA`` values, passing ``na_filter=False`` can improve the + performance of reading a large file. +verbose : bool, default False + Indicate number of ``NA`` values placed in non-numeric columns. + + .. deprecated:: 2.2.0 +skip_blank_lines : bool, default True + If ``True``, skip over blank lines rather than interpreting as ``NaN`` values. +parse_dates : bool, list of Hashable, list of lists or dict of {{Hashable : list}}, \ +default False + The behavior is as follows: + + * ``bool``. If ``True`` -> try parsing the index. Note: Automatically set to + ``True`` if ``date_format`` or ``date_parser`` arguments have been passed. + * ``list`` of ``int`` or names. e.g. If ``[1, 2, 3]`` -> try parsing columns 1, 2, 3 + each as a separate date column. + * ``list`` of ``list``. e.g. If ``[[1, 3]]`` -> combine columns 1 and 3 and parse + as a single date column. Values are joined with a space before parsing. + * ``dict``, e.g. ``{{'foo' : [1, 3]}}`` -> parse columns 1, 3 as date and call + result 'foo'. Values are joined with a space before parsing. + + If a column or index cannot be represented as an array of ``datetime``, + say because of an unparsable value or a mixture of timezones, the column + or index will be returned unaltered as an ``object`` data type. For + non-standard ``datetime`` parsing, use :func:`~pandas.to_datetime` after + :func:`~pandas.read_csv`. + + Note: A fast-path exists for iso8601-formatted dates. +infer_datetime_format : bool, default False + If ``True`` and ``parse_dates`` is enabled, pandas will attempt to infer the + format of the ``datetime`` strings in the columns, and if it can be inferred, + switch to a faster method of parsing them. In some cases this can increase + the parsing speed by 5-10x. + + .. deprecated:: 2.0.0 + A strict version of this argument is now the default, passing it has no effect. + +keep_date_col : bool, default False + If ``True`` and ``parse_dates`` specifies combining multiple columns then + keep the original columns. +date_parser : Callable, optional + Function to use for converting a sequence of string columns to an array of + ``datetime`` instances. The default uses ``dateutil.parser.parser`` to do the + conversion. pandas will try to call ``date_parser`` in three different ways, + advancing to the next if an exception occurs: 1) Pass one or more arrays + (as defined by ``parse_dates``) as arguments; 2) concatenate (row-wise) the + string values from the columns defined by ``parse_dates`` into a single array + and pass that; and 3) call ``date_parser`` once for each row using one or + more strings (corresponding to the columns defined by ``parse_dates``) as + arguments. + + .. deprecated:: 2.0.0 + Use ``date_format`` instead, or read in as ``object`` and then apply + :func:`~pandas.to_datetime` as-needed. +date_format : str or dict of column -> format, optional + Format to use for parsing dates when used in conjunction with ``parse_dates``. + The strftime to parse time, e.g. :const:`"%d/%m/%Y"`. See + `strftime documentation + `_ for more information on choices, though + note that :const:`"%f"` will parse all the way up to nanoseconds. + You can also pass: + + - "ISO8601", to parse any `ISO8601 `_ + time string (not necessarily in exactly the same format); + - "mixed", to infer the format for each element individually. This is risky, + and you should probably use it along with `dayfirst`. + + .. versionadded:: 2.0.0 +dayfirst : bool, default False + DD/MM format dates, international and European format. +cache_dates : bool, default True + If ``True``, use a cache of unique, converted dates to apply the ``datetime`` + conversion. May produce significant speed-up when parsing duplicate + date strings, especially ones with timezone offsets. + +iterator : bool, default False + Return ``TextFileReader`` object for iteration or getting chunks with + ``get_chunk()``. +chunksize : int, optional + Number of lines to read from the file per chunk. Passing a value will cause the + function to return a ``TextFileReader`` object for iteration. + See the `IO Tools docs + `_ + for more information on ``iterator`` and ``chunksize``. + +{decompression_options} + + .. versionchanged:: 1.4.0 Zstandard support. + +thousands : str (length 1), optional + Character acting as the thousands separator in numerical values. +decimal : str (length 1), default '.' + Character to recognize as decimal point (e.g., use ',' for European data). +lineterminator : str (length 1), optional + Character used to denote a line break. Only valid with C parser. +quotechar : str (length 1), optional + Character used to denote the start and end of a quoted item. Quoted + items can include the ``delimiter`` and it will be ignored. +quoting : {{0 or csv.QUOTE_MINIMAL, 1 or csv.QUOTE_ALL, 2 or csv.QUOTE_NONNUMERIC, \ +3 or csv.QUOTE_NONE}}, default csv.QUOTE_MINIMAL + Control field quoting behavior per ``csv.QUOTE_*`` constants. Default is + ``csv.QUOTE_MINIMAL`` (i.e., 0) which implies that only fields containing special + characters are quoted (e.g., characters defined in ``quotechar``, ``delimiter``, + or ``lineterminator``. +doublequote : bool, default True + When ``quotechar`` is specified and ``quoting`` is not ``QUOTE_NONE``, indicate + whether or not to interpret two consecutive ``quotechar`` elements INSIDE a + field as a single ``quotechar`` element. +escapechar : str (length 1), optional + Character used to escape other characters. +comment : str (length 1), optional + Character indicating that the remainder of line should not be parsed. + If found at the beginning + of a line, the line will be ignored altogether. This parameter must be a + single character. Like empty lines (as long as ``skip_blank_lines=True``), + fully commented lines are ignored by the parameter ``header`` but not by + ``skiprows``. For example, if ``comment='#'``, parsing + ``#empty\\na,b,c\\n1,2,3`` with ``header=0`` will result in ``'a,b,c'`` being + treated as the header. +encoding : str, optional, default 'utf-8' + Encoding to use for UTF when reading/writing (ex. ``'utf-8'``). `List of Python + standard encodings + `_ . + +encoding_errors : str, optional, default 'strict' + How encoding errors are treated. `List of possible values + `_ . + + .. versionadded:: 1.3.0 + +dialect : str or csv.Dialect, optional + If provided, this parameter will override values (default or not) for the + following parameters: ``delimiter``, ``doublequote``, ``escapechar``, + ``skipinitialspace``, ``quotechar``, and ``quoting``. If it is necessary to + override values, a ``ParserWarning`` will be issued. See ``csv.Dialect`` + documentation for more details. +on_bad_lines : {{'error', 'warn', 'skip'}} or Callable, default 'error' + Specifies what to do upon encountering a bad line (a line with too many fields). + Allowed values are : + + - ``'error'``, raise an Exception when a bad line is encountered. + - ``'warn'``, raise a warning when a bad line is encountered and skip that line. + - ``'skip'``, skip bad lines without raising or warning when they are encountered. + + .. versionadded:: 1.3.0 + + .. versionadded:: 1.4.0 + + - Callable, function with signature + ``(bad_line: list[str]) -> list[str] | None`` that will process a single + bad line. ``bad_line`` is a list of strings split by the ``sep``. + If the function returns ``None``, the bad line will be ignored. + If the function returns a new ``list`` of strings with more elements than + expected, a ``ParserWarning`` will be emitted while dropping extra elements. + Only supported when ``engine='python'`` + + .. versionchanged:: 2.2.0 + + - Callable, function with signature + as described in `pyarrow documentation + `_ when ``engine='pyarrow'`` + +delim_whitespace : bool, default False + Specifies whether or not whitespace (e.g. ``' '`` or ``'\\t'``) will be + used as the ``sep`` delimiter. Equivalent to setting ``sep='\\s+'``. If this option + is set to ``True``, nothing should be passed in for the ``delimiter`` + parameter. + + .. deprecated:: 2.2.0 + Use ``sep="\\s+"`` instead. +low_memory : bool, default True + Internally process the file in chunks, resulting in lower memory use + while parsing, but possibly mixed type inference. To ensure no mixed + types either set ``False``, or specify the type with the ``dtype`` parameter. + Note that the entire file is read into a single :class:`~pandas.DataFrame` + regardless, use the ``chunksize`` or ``iterator`` parameter to return the data in + chunks. (Only valid with C parser). +memory_map : bool, default False + If a filepath is provided for ``filepath_or_buffer``, map the file object + directly onto memory and access the data directly from there. Using this + option can improve performance because there is no longer any I/O overhead. +float_precision : {{'high', 'legacy', 'round_trip'}}, optional + Specifies which converter the C engine should use for floating-point + values. The options are ``None`` or ``'high'`` for the ordinary converter, + ``'legacy'`` for the original lower precision pandas converter, and + ``'round_trip'`` for the round-trip converter. + +{storage_options} + +dtype_backend : {{'numpy_nullable', 'pyarrow'}}, default 'numpy_nullable' + Back-end data type applied to the resultant :class:`DataFrame` + (still experimental). Behaviour is as follows: + + * ``"numpy_nullable"``: returns nullable-dtype-backed :class:`DataFrame` + (default). + * ``"pyarrow"``: returns pyarrow-backed nullable :class:`ArrowDtype` + DataFrame. + + .. versionadded:: 2.0 + +Returns +------- +DataFrame or TextFileReader + A comma-separated values (csv) file is returned as two-dimensional + data structure with labeled axes. + +See Also +-------- +DataFrame.to_csv : Write DataFrame to a comma-separated values (csv) file. +{see_also_func_name} : {see_also_func_summary} +read_fwf : Read a table of fixed-width formatted lines into DataFrame. + +Examples +-------- +>>> pd.{func_name}('data.csv') # doctest: +SKIP +""" +) + + +class _C_Parser_Defaults(TypedDict): + delim_whitespace: Literal[False] + na_filter: Literal[True] + low_memory: Literal[True] + memory_map: Literal[False] + float_precision: None + + +_c_parser_defaults: _C_Parser_Defaults = { + "delim_whitespace": False, + "na_filter": True, + "low_memory": True, + "memory_map": False, + "float_precision": None, +} + + +class _Fwf_Defaults(TypedDict): + colspecs: Literal["infer"] + infer_nrows: Literal[100] + widths: None + + +_fwf_defaults: _Fwf_Defaults = {"colspecs": "infer", "infer_nrows": 100, "widths": None} +_c_unsupported = {"skipfooter"} +_python_unsupported = {"low_memory", "float_precision"} +_pyarrow_unsupported = { + "skipfooter", + "float_precision", + "chunksize", + "comment", + "nrows", + "thousands", + "memory_map", + "dialect", + "delim_whitespace", + "quoting", + "lineterminator", + "converters", + "iterator", + "dayfirst", + "verbose", + "skipinitialspace", + "low_memory", +} + + +class _DeprecationConfig(NamedTuple): + default_value: Any + msg: str | None + + +@overload +def validate_integer(name: str, val: None, min_val: int = ...) -> None: + ... + + +@overload +def validate_integer(name: str, val: float, min_val: int = ...) -> int: + ... + + +@overload +def validate_integer(name: str, val: int | None, min_val: int = ...) -> int | None: + ... + + +def validate_integer( + name: str, val: int | float | None, min_val: int = 0 +) -> int | None: + """ + Checks whether the 'name' parameter for parsing is either + an integer OR float that can SAFELY be cast to an integer + without losing accuracy. Raises a ValueError if that is + not the case. + + Parameters + ---------- + name : str + Parameter name (used for error reporting) + val : int or float + The value to check + min_val : int + Minimum allowed value (val < min_val will result in a ValueError) + """ + if val is None: + return val + + msg = f"'{name:s}' must be an integer >={min_val:d}" + if is_float(val): + if int(val) != val: + raise ValueError(msg) + val = int(val) + elif not (is_integer(val) and val >= min_val): + raise ValueError(msg) + + return int(val) + + +def _validate_names(names: Sequence[Hashable] | None) -> None: + """ + Raise ValueError if the `names` parameter contains duplicates or has an + invalid data type. + + Parameters + ---------- + names : array-like or None + An array containing a list of the names used for the output DataFrame. + + Raises + ------ + ValueError + If names are not unique or are not ordered (e.g. set). + """ + if names is not None: + if len(names) != len(set(names)): + raise ValueError("Duplicate names are not allowed.") + if not ( + is_list_like(names, allow_sets=False) or isinstance(names, abc.KeysView) + ): + raise ValueError("Names should be an ordered collection.") + + +def _read( + filepath_or_buffer: FilePath | ReadCsvBuffer[bytes] | ReadCsvBuffer[str], kwds +) -> DataFrame | TextFileReader: + """Generic reader of line files.""" + # if we pass a date_parser and parse_dates=False, we should not parse the + # dates GH#44366 + if kwds.get("parse_dates", None) is None: + if ( + kwds.get("date_parser", lib.no_default) is lib.no_default + and kwds.get("date_format", None) is None + ): + kwds["parse_dates"] = False + else: + kwds["parse_dates"] = True + + # Extract some of the arguments (pass chunksize on). + iterator = kwds.get("iterator", False) + chunksize = kwds.get("chunksize", None) + if kwds.get("engine") == "pyarrow": + if iterator: + raise ValueError( + "The 'iterator' option is not supported with the 'pyarrow' engine" + ) + + if chunksize is not None: + raise ValueError( + "The 'chunksize' option is not supported with the 'pyarrow' engine" + ) + else: + chunksize = validate_integer("chunksize", chunksize, 1) + + nrows = kwds.get("nrows", None) + + # Check for duplicates in names. + _validate_names(kwds.get("names", None)) + + # Create the parser. + parser = TextFileReader(filepath_or_buffer, **kwds) + + if chunksize or iterator: + return parser + + with parser: + return parser.read(nrows) + + +# iterator=True -> TextFileReader +@overload +def read_csv( + filepath_or_buffer: FilePath | ReadCsvBuffer[bytes] | ReadCsvBuffer[str], + *, + sep: str | None | lib.NoDefault = ..., + delimiter: str | None | lib.NoDefault = ..., + header: int | Sequence[int] | None | Literal["infer"] = ..., + names: Sequence[Hashable] | None | lib.NoDefault = ..., + index_col: IndexLabel | Literal[False] | None = ..., + usecols: UsecolsArgType = ..., + dtype: DtypeArg | None = ..., + engine: CSVEngine | None = ..., + converters: Mapping[Hashable, Callable] | None = ..., + true_values: list | None = ..., + false_values: list | None = ..., + skipinitialspace: bool = ..., + skiprows: list[int] | int | Callable[[Hashable], bool] | None = ..., + skipfooter: int = ..., + nrows: int | None = ..., + na_values: Hashable + | Iterable[Hashable] + | Mapping[Hashable, Iterable[Hashable]] + | None = ..., + na_filter: bool = ..., + verbose: bool | lib.NoDefault = ..., + skip_blank_lines: bool = ..., + parse_dates: bool | Sequence[Hashable] | None = ..., + infer_datetime_format: bool | lib.NoDefault = ..., + keep_date_col: bool | lib.NoDefault = ..., + date_parser: Callable | lib.NoDefault = ..., + date_format: str | dict[Hashable, str] | None = ..., + dayfirst: bool = ..., + cache_dates: bool = ..., + iterator: Literal[True], + chunksize: int | None = ..., + compression: CompressionOptions = ..., + thousands: str | None = ..., + decimal: str = ..., + lineterminator: str | None = ..., + quotechar: str = ..., + quoting: int = ..., + doublequote: bool = ..., + escapechar: str | None = ..., + comment: str | None = ..., + encoding: str | None = ..., + encoding_errors: str | None = ..., + dialect: str | csv.Dialect | None = ..., + on_bad_lines=..., + delim_whitespace: bool | lib.NoDefault = ..., + low_memory: bool = ..., + memory_map: bool = ..., + float_precision: Literal["high", "legacy"] | None = ..., + storage_options: StorageOptions = ..., + dtype_backend: DtypeBackend | lib.NoDefault = ..., +) -> TextFileReader: + ... + + +# chunksize=int -> TextFileReader +@overload +def read_csv( + filepath_or_buffer: FilePath | ReadCsvBuffer[bytes] | ReadCsvBuffer[str], + *, + sep: str | None | lib.NoDefault = ..., + delimiter: str | None | lib.NoDefault = ..., + header: int | Sequence[int] | None | Literal["infer"] = ..., + names: Sequence[Hashable] | None | lib.NoDefault = ..., + index_col: IndexLabel | Literal[False] | None = ..., + usecols: UsecolsArgType = ..., + dtype: DtypeArg | None = ..., + engine: CSVEngine | None = ..., + converters: Mapping[Hashable, Callable] | None = ..., + true_values: list | None = ..., + false_values: list | None = ..., + skipinitialspace: bool = ..., + skiprows: list[int] | int | Callable[[Hashable], bool] | None = ..., + skipfooter: int = ..., + nrows: int | None = ..., + na_values: Hashable + | Iterable[Hashable] + | Mapping[Hashable, Iterable[Hashable]] + | None = ..., + keep_default_na: bool = ..., + na_filter: bool = ..., + verbose: bool | lib.NoDefault = ..., + skip_blank_lines: bool = ..., + parse_dates: bool | Sequence[Hashable] | None = ..., + infer_datetime_format: bool | lib.NoDefault = ..., + keep_date_col: bool | lib.NoDefault = ..., + date_parser: Callable | lib.NoDefault = ..., + date_format: str | dict[Hashable, str] | None = ..., + dayfirst: bool = ..., + cache_dates: bool = ..., + iterator: bool = ..., + chunksize: int, + compression: CompressionOptions = ..., + thousands: str | None = ..., + decimal: str = ..., + lineterminator: str | None = ..., + quotechar: str = ..., + quoting: int = ..., + doublequote: bool = ..., + escapechar: str | None = ..., + comment: str | None = ..., + encoding: str | None = ..., + encoding_errors: str | None = ..., + dialect: str | csv.Dialect | None = ..., + on_bad_lines=..., + delim_whitespace: bool | lib.NoDefault = ..., + low_memory: bool = ..., + memory_map: bool = ..., + float_precision: Literal["high", "legacy"] | None = ..., + storage_options: StorageOptions = ..., + dtype_backend: DtypeBackend | lib.NoDefault = ..., +) -> TextFileReader: + ... + + +# default case -> DataFrame +@overload +def read_csv( + filepath_or_buffer: FilePath | ReadCsvBuffer[bytes] | ReadCsvBuffer[str], + *, + sep: str | None | lib.NoDefault = ..., + delimiter: str | None | lib.NoDefault = ..., + header: int | Sequence[int] | None | Literal["infer"] = ..., + names: Sequence[Hashable] | None | lib.NoDefault = ..., + index_col: IndexLabel | Literal[False] | None = ..., + usecols: UsecolsArgType = ..., + dtype: DtypeArg | None = ..., + engine: CSVEngine | None = ..., + converters: Mapping[Hashable, Callable] | None = ..., + true_values: list | None = ..., + false_values: list | None = ..., + skipinitialspace: bool = ..., + skiprows: list[int] | int | Callable[[Hashable], bool] | None = ..., + skipfooter: int = ..., + nrows: int | None = ..., + na_values: Hashable + | Iterable[Hashable] + | Mapping[Hashable, Iterable[Hashable]] + | None = ..., + keep_default_na: bool = ..., + na_filter: bool = ..., + verbose: bool | lib.NoDefault = ..., + skip_blank_lines: bool = ..., + parse_dates: bool | Sequence[Hashable] | None = ..., + infer_datetime_format: bool | lib.NoDefault = ..., + keep_date_col: bool | lib.NoDefault = ..., + date_parser: Callable | lib.NoDefault = ..., + date_format: str | dict[Hashable, str] | None = ..., + dayfirst: bool = ..., + cache_dates: bool = ..., + iterator: Literal[False] = ..., + chunksize: None = ..., + compression: CompressionOptions = ..., + thousands: str | None = ..., + decimal: str = ..., + lineterminator: str | None = ..., + quotechar: str = ..., + quoting: int = ..., + doublequote: bool = ..., + escapechar: str | None = ..., + comment: str | None = ..., + encoding: str | None = ..., + encoding_errors: str | None = ..., + dialect: str | csv.Dialect | None = ..., + on_bad_lines=..., + delim_whitespace: bool | lib.NoDefault = ..., + low_memory: bool = ..., + memory_map: bool = ..., + float_precision: Literal["high", "legacy"] | None = ..., + storage_options: StorageOptions = ..., + dtype_backend: DtypeBackend | lib.NoDefault = ..., +) -> DataFrame: + ... + + +# Unions -> DataFrame | TextFileReader +@overload +def read_csv( + filepath_or_buffer: FilePath | ReadCsvBuffer[bytes] | ReadCsvBuffer[str], + *, + sep: str | None | lib.NoDefault = ..., + delimiter: str | None | lib.NoDefault = ..., + header: int | Sequence[int] | None | Literal["infer"] = ..., + names: Sequence[Hashable] | None | lib.NoDefault = ..., + index_col: IndexLabel | Literal[False] | None = ..., + usecols: UsecolsArgType = ..., + dtype: DtypeArg | None = ..., + engine: CSVEngine | None = ..., + converters: Mapping[Hashable, Callable] | None = ..., + true_values: list | None = ..., + false_values: list | None = ..., + skipinitialspace: bool = ..., + skiprows: list[int] | int | Callable[[Hashable], bool] | None = ..., + skipfooter: int = ..., + nrows: int | None = ..., + na_values: Hashable + | Iterable[Hashable] + | Mapping[Hashable, Iterable[Hashable]] + | None = ..., + keep_default_na: bool = ..., + na_filter: bool = ..., + verbose: bool | lib.NoDefault = ..., + skip_blank_lines: bool = ..., + parse_dates: bool | Sequence[Hashable] | None = ..., + infer_datetime_format: bool | lib.NoDefault = ..., + keep_date_col: bool | lib.NoDefault = ..., + date_parser: Callable | lib.NoDefault = ..., + date_format: str | dict[Hashable, str] | None = ..., + dayfirst: bool = ..., + cache_dates: bool = ..., + iterator: bool = ..., + chunksize: int | None = ..., + compression: CompressionOptions = ..., + thousands: str | None = ..., + decimal: str = ..., + lineterminator: str | None = ..., + quotechar: str = ..., + quoting: int = ..., + doublequote: bool = ..., + escapechar: str | None = ..., + comment: str | None = ..., + encoding: str | None = ..., + encoding_errors: str | None = ..., + dialect: str | csv.Dialect | None = ..., + on_bad_lines=..., + delim_whitespace: bool | lib.NoDefault = ..., + low_memory: bool = ..., + memory_map: bool = ..., + float_precision: Literal["high", "legacy"] | None = ..., + storage_options: StorageOptions = ..., + dtype_backend: DtypeBackend | lib.NoDefault = ..., +) -> DataFrame | TextFileReader: + ... + + +@Appender( + _doc_read_csv_and_table.format( + func_name="read_csv", + summary="Read a comma-separated values (csv) file into DataFrame.", + see_also_func_name="read_table", + see_also_func_summary="Read general delimited file into DataFrame.", + _default_sep="','", + storage_options=_shared_docs["storage_options"], + decompression_options=_shared_docs["decompression_options"] + % "filepath_or_buffer", + ) +) +def read_csv( + filepath_or_buffer: FilePath | ReadCsvBuffer[bytes] | ReadCsvBuffer[str], + *, + sep: str | None | lib.NoDefault = lib.no_default, + delimiter: str | None | lib.NoDefault = None, + # Column and Index Locations and Names + header: int | Sequence[int] | None | Literal["infer"] = "infer", + names: Sequence[Hashable] | None | lib.NoDefault = lib.no_default, + index_col: IndexLabel | Literal[False] | None = None, + usecols: UsecolsArgType = None, + # General Parsing Configuration + dtype: DtypeArg | None = None, + engine: CSVEngine | None = None, + converters: Mapping[Hashable, Callable] | None = None, + true_values: list | None = None, + false_values: list | None = None, + skipinitialspace: bool = False, + skiprows: list[int] | int | Callable[[Hashable], bool] | None = None, + skipfooter: int = 0, + nrows: int | None = None, + # NA and Missing Data Handling + na_values: Hashable + | Iterable[Hashable] + | Mapping[Hashable, Iterable[Hashable]] + | None = None, + keep_default_na: bool = True, + na_filter: bool = True, + verbose: bool | lib.NoDefault = lib.no_default, + skip_blank_lines: bool = True, + # Datetime Handling + parse_dates: bool | Sequence[Hashable] | None = None, + infer_datetime_format: bool | lib.NoDefault = lib.no_default, + keep_date_col: bool | lib.NoDefault = lib.no_default, + date_parser: Callable | lib.NoDefault = lib.no_default, + date_format: str | dict[Hashable, str] | None = None, + dayfirst: bool = False, + cache_dates: bool = True, + # Iteration + iterator: bool = False, + chunksize: int | None = None, + # Quoting, Compression, and File Format + compression: CompressionOptions = "infer", + thousands: str | None = None, + decimal: str = ".", + lineterminator: str | None = None, + quotechar: str = '"', + quoting: int = csv.QUOTE_MINIMAL, + doublequote: bool = True, + escapechar: str | None = None, + comment: str | None = None, + encoding: str | None = None, + encoding_errors: str | None = "strict", + dialect: str | csv.Dialect | None = None, + # Error Handling + on_bad_lines: str = "error", + # Internal + delim_whitespace: bool | lib.NoDefault = lib.no_default, + low_memory: bool = _c_parser_defaults["low_memory"], + memory_map: bool = False, + float_precision: Literal["high", "legacy"] | None = None, + storage_options: StorageOptions | None = None, + dtype_backend: DtypeBackend | lib.NoDefault = lib.no_default, +) -> DataFrame | TextFileReader: + if keep_date_col is not lib.no_default: + # GH#55569 + warnings.warn( + "The 'keep_date_col' keyword in pd.read_csv is deprecated and " + "will be removed in a future version. Explicitly remove unwanted " + "columns after parsing instead.", + FutureWarning, + stacklevel=find_stack_level(), + ) + else: + keep_date_col = False + + if lib.is_list_like(parse_dates): + # GH#55569 + depr = False + # error: Item "bool" of "bool | Sequence[Hashable] | None" has no + # attribute "__iter__" (not iterable) + if not all(is_hashable(x) for x in parse_dates): # type: ignore[union-attr] + depr = True + elif isinstance(parse_dates, dict) and any( + lib.is_list_like(x) for x in parse_dates.values() + ): + depr = True + if depr: + warnings.warn( + "Support for nested sequences for 'parse_dates' in pd.read_csv " + "is deprecated. Combine the desired columns with pd.to_datetime " + "after parsing instead.", + FutureWarning, + stacklevel=find_stack_level(), + ) + + if infer_datetime_format is not lib.no_default: + warnings.warn( + "The argument 'infer_datetime_format' is deprecated and will " + "be removed in a future version. " + "A strict version of it is now the default, see " + "https://pandas.pydata.org/pdeps/0004-consistent-to-datetime-parsing.html. " + "You can safely remove this argument.", + FutureWarning, + stacklevel=find_stack_level(), + ) + + if delim_whitespace is not lib.no_default: + # GH#55569 + warnings.warn( + "The 'delim_whitespace' keyword in pd.read_csv is deprecated and " + "will be removed in a future version. Use ``sep='\\s+'`` instead", + FutureWarning, + stacklevel=find_stack_level(), + ) + else: + delim_whitespace = False + + if verbose is not lib.no_default: + # GH#55569 + warnings.warn( + "The 'verbose' keyword in pd.read_csv is deprecated and " + "will be removed in a future version.", + FutureWarning, + stacklevel=find_stack_level(), + ) + else: + verbose = False + + # locals() should never be modified + kwds = locals().copy() + del kwds["filepath_or_buffer"] + del kwds["sep"] + + kwds_defaults = _refine_defaults_read( + dialect, + delimiter, + delim_whitespace, + engine, + sep, + on_bad_lines, + names, + defaults={"delimiter": ","}, + dtype_backend=dtype_backend, + ) + kwds.update(kwds_defaults) + + return _read(filepath_or_buffer, kwds) + + +# iterator=True -> TextFileReader +@overload +def read_table( + filepath_or_buffer: FilePath | ReadCsvBuffer[bytes] | ReadCsvBuffer[str], + *, + sep: str | None | lib.NoDefault = ..., + delimiter: str | None | lib.NoDefault = ..., + header: int | Sequence[int] | None | Literal["infer"] = ..., + names: Sequence[Hashable] | None | lib.NoDefault = ..., + index_col: IndexLabel | Literal[False] | None = ..., + usecols: UsecolsArgType = ..., + dtype: DtypeArg | None = ..., + engine: CSVEngine | None = ..., + converters: Mapping[Hashable, Callable] | None = ..., + true_values: list | None = ..., + false_values: list | None = ..., + skipinitialspace: bool = ..., + skiprows: list[int] | int | Callable[[Hashable], bool] | None = ..., + skipfooter: int = ..., + nrows: int | None = ..., + na_values: Sequence[str] | Mapping[str, Sequence[str]] | None = ..., + keep_default_na: bool = ..., + na_filter: bool = ..., + verbose: bool | lib.NoDefault = ..., + skip_blank_lines: bool = ..., + parse_dates: bool | Sequence[Hashable] = ..., + infer_datetime_format: bool | lib.NoDefault = ..., + keep_date_col: bool | lib.NoDefault = ..., + date_parser: Callable | lib.NoDefault = ..., + date_format: str | dict[Hashable, str] | None = ..., + dayfirst: bool = ..., + cache_dates: bool = ..., + iterator: Literal[True], + chunksize: int | None = ..., + compression: CompressionOptions = ..., + thousands: str | None = ..., + decimal: str = ..., + lineterminator: str | None = ..., + quotechar: str = ..., + quoting: int = ..., + doublequote: bool = ..., + escapechar: str | None = ..., + comment: str | None = ..., + encoding: str | None = ..., + encoding_errors: str | None = ..., + dialect: str | csv.Dialect | None = ..., + on_bad_lines=..., + delim_whitespace: bool = ..., + low_memory: bool = ..., + memory_map: bool = ..., + float_precision: str | None = ..., + storage_options: StorageOptions = ..., + dtype_backend: DtypeBackend | lib.NoDefault = ..., +) -> TextFileReader: + ... + + +# chunksize=int -> TextFileReader +@overload +def read_table( + filepath_or_buffer: FilePath | ReadCsvBuffer[bytes] | ReadCsvBuffer[str], + *, + sep: str | None | lib.NoDefault = ..., + delimiter: str | None | lib.NoDefault = ..., + header: int | Sequence[int] | None | Literal["infer"] = ..., + names: Sequence[Hashable] | None | lib.NoDefault = ..., + index_col: IndexLabel | Literal[False] | None = ..., + usecols: UsecolsArgType = ..., + dtype: DtypeArg | None = ..., + engine: CSVEngine | None = ..., + converters: Mapping[Hashable, Callable] | None = ..., + true_values: list | None = ..., + false_values: list | None = ..., + skipinitialspace: bool = ..., + skiprows: list[int] | int | Callable[[Hashable], bool] | None = ..., + skipfooter: int = ..., + nrows: int | None = ..., + na_values: Sequence[str] | Mapping[str, Sequence[str]] | None = ..., + keep_default_na: bool = ..., + na_filter: bool = ..., + verbose: bool | lib.NoDefault = ..., + skip_blank_lines: bool = ..., + parse_dates: bool | Sequence[Hashable] = ..., + infer_datetime_format: bool | lib.NoDefault = ..., + keep_date_col: bool | lib.NoDefault = ..., + date_parser: Callable | lib.NoDefault = ..., + date_format: str | dict[Hashable, str] | None = ..., + dayfirst: bool = ..., + cache_dates: bool = ..., + iterator: bool = ..., + chunksize: int, + compression: CompressionOptions = ..., + thousands: str | None = ..., + decimal: str = ..., + lineterminator: str | None = ..., + quotechar: str = ..., + quoting: int = ..., + doublequote: bool = ..., + escapechar: str | None = ..., + comment: str | None = ..., + encoding: str | None = ..., + encoding_errors: str | None = ..., + dialect: str | csv.Dialect | None = ..., + on_bad_lines=..., + delim_whitespace: bool = ..., + low_memory: bool = ..., + memory_map: bool = ..., + float_precision: str | None = ..., + storage_options: StorageOptions = ..., + dtype_backend: DtypeBackend | lib.NoDefault = ..., +) -> TextFileReader: + ... + + +# default -> DataFrame +@overload +def read_table( + filepath_or_buffer: FilePath | ReadCsvBuffer[bytes] | ReadCsvBuffer[str], + *, + sep: str | None | lib.NoDefault = ..., + delimiter: str | None | lib.NoDefault = ..., + header: int | Sequence[int] | None | Literal["infer"] = ..., + names: Sequence[Hashable] | None | lib.NoDefault = ..., + index_col: IndexLabel | Literal[False] | None = ..., + usecols: UsecolsArgType = ..., + dtype: DtypeArg | None = ..., + engine: CSVEngine | None = ..., + converters: Mapping[Hashable, Callable] | None = ..., + true_values: list | None = ..., + false_values: list | None = ..., + skipinitialspace: bool = ..., + skiprows: list[int] | int | Callable[[Hashable], bool] | None = ..., + skipfooter: int = ..., + nrows: int | None = ..., + na_values: Sequence[str] | Mapping[str, Sequence[str]] | None = ..., + keep_default_na: bool = ..., + na_filter: bool = ..., + verbose: bool | lib.NoDefault = ..., + skip_blank_lines: bool = ..., + parse_dates: bool | Sequence[Hashable] = ..., + infer_datetime_format: bool | lib.NoDefault = ..., + keep_date_col: bool | lib.NoDefault = ..., + date_parser: Callable | lib.NoDefault = ..., + date_format: str | dict[Hashable, str] | None = ..., + dayfirst: bool = ..., + cache_dates: bool = ..., + iterator: Literal[False] = ..., + chunksize: None = ..., + compression: CompressionOptions = ..., + thousands: str | None = ..., + decimal: str = ..., + lineterminator: str | None = ..., + quotechar: str = ..., + quoting: int = ..., + doublequote: bool = ..., + escapechar: str | None = ..., + comment: str | None = ..., + encoding: str | None = ..., + encoding_errors: str | None = ..., + dialect: str | csv.Dialect | None = ..., + on_bad_lines=..., + delim_whitespace: bool = ..., + low_memory: bool = ..., + memory_map: bool = ..., + float_precision: str | None = ..., + storage_options: StorageOptions = ..., + dtype_backend: DtypeBackend | lib.NoDefault = ..., +) -> DataFrame: + ... + + +# Unions -> DataFrame | TextFileReader +@overload +def read_table( + filepath_or_buffer: FilePath | ReadCsvBuffer[bytes] | ReadCsvBuffer[str], + *, + sep: str | None | lib.NoDefault = ..., + delimiter: str | None | lib.NoDefault = ..., + header: int | Sequence[int] | None | Literal["infer"] = ..., + names: Sequence[Hashable] | None | lib.NoDefault = ..., + index_col: IndexLabel | Literal[False] | None = ..., + usecols: UsecolsArgType = ..., + dtype: DtypeArg | None = ..., + engine: CSVEngine | None = ..., + converters: Mapping[Hashable, Callable] | None = ..., + true_values: list | None = ..., + false_values: list | None = ..., + skipinitialspace: bool = ..., + skiprows: list[int] | int | Callable[[Hashable], bool] | None = ..., + skipfooter: int = ..., + nrows: int | None = ..., + na_values: Sequence[str] | Mapping[str, Sequence[str]] | None = ..., + keep_default_na: bool = ..., + na_filter: bool = ..., + verbose: bool | lib.NoDefault = ..., + skip_blank_lines: bool = ..., + parse_dates: bool | Sequence[Hashable] = ..., + infer_datetime_format: bool | lib.NoDefault = ..., + keep_date_col: bool | lib.NoDefault = ..., + date_parser: Callable | lib.NoDefault = ..., + date_format: str | dict[Hashable, str] | None = ..., + dayfirst: bool = ..., + cache_dates: bool = ..., + iterator: bool = ..., + chunksize: int | None = ..., + compression: CompressionOptions = ..., + thousands: str | None = ..., + decimal: str = ..., + lineterminator: str | None = ..., + quotechar: str = ..., + quoting: int = ..., + doublequote: bool = ..., + escapechar: str | None = ..., + comment: str | None = ..., + encoding: str | None = ..., + encoding_errors: str | None = ..., + dialect: str | csv.Dialect | None = ..., + on_bad_lines=..., + delim_whitespace: bool = ..., + low_memory: bool = ..., + memory_map: bool = ..., + float_precision: str | None = ..., + storage_options: StorageOptions = ..., + dtype_backend: DtypeBackend | lib.NoDefault = ..., +) -> DataFrame | TextFileReader: + ... + + +@Appender( + _doc_read_csv_and_table.format( + func_name="read_table", + summary="Read general delimited file into DataFrame.", + see_also_func_name="read_csv", + see_also_func_summary=( + "Read a comma-separated values (csv) file into DataFrame." + ), + _default_sep=r"'\\t' (tab-stop)", + storage_options=_shared_docs["storage_options"], + decompression_options=_shared_docs["decompression_options"] + % "filepath_or_buffer", + ) +) +def read_table( + filepath_or_buffer: FilePath | ReadCsvBuffer[bytes] | ReadCsvBuffer[str], + *, + sep: str | None | lib.NoDefault = lib.no_default, + delimiter: str | None | lib.NoDefault = None, + # Column and Index Locations and Names + header: int | Sequence[int] | None | Literal["infer"] = "infer", + names: Sequence[Hashable] | None | lib.NoDefault = lib.no_default, + index_col: IndexLabel | Literal[False] | None = None, + usecols: UsecolsArgType = None, + # General Parsing Configuration + dtype: DtypeArg | None = None, + engine: CSVEngine | None = None, + converters: Mapping[Hashable, Callable] | None = None, + true_values: list | None = None, + false_values: list | None = None, + skipinitialspace: bool = False, + skiprows: list[int] | int | Callable[[Hashable], bool] | None = None, + skipfooter: int = 0, + nrows: int | None = None, + # NA and Missing Data Handling + na_values: Sequence[str] | Mapping[str, Sequence[str]] | None = None, + keep_default_na: bool = True, + na_filter: bool = True, + verbose: bool | lib.NoDefault = lib.no_default, + skip_blank_lines: bool = True, + # Datetime Handling + parse_dates: bool | Sequence[Hashable] = False, + infer_datetime_format: bool | lib.NoDefault = lib.no_default, + keep_date_col: bool | lib.NoDefault = lib.no_default, + date_parser: Callable | lib.NoDefault = lib.no_default, + date_format: str | dict[Hashable, str] | None = None, + dayfirst: bool = False, + cache_dates: bool = True, + # Iteration + iterator: bool = False, + chunksize: int | None = None, + # Quoting, Compression, and File Format + compression: CompressionOptions = "infer", + thousands: str | None = None, + decimal: str = ".", + lineterminator: str | None = None, + quotechar: str = '"', + quoting: int = csv.QUOTE_MINIMAL, + doublequote: bool = True, + escapechar: str | None = None, + comment: str | None = None, + encoding: str | None = None, + encoding_errors: str | None = "strict", + dialect: str | csv.Dialect | None = None, + # Error Handling + on_bad_lines: str = "error", + # Internal + delim_whitespace: bool | lib.NoDefault = lib.no_default, + low_memory: bool = _c_parser_defaults["low_memory"], + memory_map: bool = False, + float_precision: str | None = None, + storage_options: StorageOptions | None = None, + dtype_backend: DtypeBackend | lib.NoDefault = lib.no_default, +) -> DataFrame | TextFileReader: + if keep_date_col is not lib.no_default: + # GH#55569 + warnings.warn( + "The 'keep_date_col' keyword in pd.read_table is deprecated and " + "will be removed in a future version. Explicitly remove unwanted " + "columns after parsing instead.", + FutureWarning, + stacklevel=find_stack_level(), + ) + else: + keep_date_col = False + + # error: Item "bool" of "bool | Sequence[Hashable]" has no attribute "__iter__" + if lib.is_list_like(parse_dates) and not all(is_hashable(x) for x in parse_dates): # type: ignore[union-attr] + # GH#55569 + warnings.warn( + "Support for nested sequences for 'parse_dates' in pd.read_table " + "is deprecated. Combine the desired columns with pd.to_datetime " + "after parsing instead.", + FutureWarning, + stacklevel=find_stack_level(), + ) + + if infer_datetime_format is not lib.no_default: + warnings.warn( + "The argument 'infer_datetime_format' is deprecated and will " + "be removed in a future version. " + "A strict version of it is now the default, see " + "https://pandas.pydata.org/pdeps/0004-consistent-to-datetime-parsing.html. " + "You can safely remove this argument.", + FutureWarning, + stacklevel=find_stack_level(), + ) + + if delim_whitespace is not lib.no_default: + # GH#55569 + warnings.warn( + "The 'delim_whitespace' keyword in pd.read_table is deprecated and " + "will be removed in a future version. Use ``sep='\\s+'`` instead", + FutureWarning, + stacklevel=find_stack_level(), + ) + else: + delim_whitespace = False + + if verbose is not lib.no_default: + # GH#55569 + warnings.warn( + "The 'verbose' keyword in pd.read_table is deprecated and " + "will be removed in a future version.", + FutureWarning, + stacklevel=find_stack_level(), + ) + else: + verbose = False + + # locals() should never be modified + kwds = locals().copy() + del kwds["filepath_or_buffer"] + del kwds["sep"] + + kwds_defaults = _refine_defaults_read( + dialect, + delimiter, + delim_whitespace, + engine, + sep, + on_bad_lines, + names, + defaults={"delimiter": "\t"}, + dtype_backend=dtype_backend, + ) + kwds.update(kwds_defaults) + + return _read(filepath_or_buffer, kwds) + + +@overload +def read_fwf( + filepath_or_buffer: FilePath | ReadCsvBuffer[bytes] | ReadCsvBuffer[str], + *, + colspecs: Sequence[tuple[int, int]] | str | None = ..., + widths: Sequence[int] | None = ..., + infer_nrows: int = ..., + dtype_backend: DtypeBackend | lib.NoDefault = ..., + iterator: Literal[True], + chunksize: int | None = ..., + **kwds, +) -> TextFileReader: + ... + + +@overload +def read_fwf( + filepath_or_buffer: FilePath | ReadCsvBuffer[bytes] | ReadCsvBuffer[str], + *, + colspecs: Sequence[tuple[int, int]] | str | None = ..., + widths: Sequence[int] | None = ..., + infer_nrows: int = ..., + dtype_backend: DtypeBackend | lib.NoDefault = ..., + iterator: bool = ..., + chunksize: int, + **kwds, +) -> TextFileReader: + ... + + +@overload +def read_fwf( + filepath_or_buffer: FilePath | ReadCsvBuffer[bytes] | ReadCsvBuffer[str], + *, + colspecs: Sequence[tuple[int, int]] | str | None = ..., + widths: Sequence[int] | None = ..., + infer_nrows: int = ..., + dtype_backend: DtypeBackend | lib.NoDefault = ..., + iterator: Literal[False] = ..., + chunksize: None = ..., + **kwds, +) -> DataFrame: + ... + + +def read_fwf( + filepath_or_buffer: FilePath | ReadCsvBuffer[bytes] | ReadCsvBuffer[str], + *, + colspecs: Sequence[tuple[int, int]] | str | None = "infer", + widths: Sequence[int] | None = None, + infer_nrows: int = 100, + dtype_backend: DtypeBackend | lib.NoDefault = lib.no_default, + iterator: bool = False, + chunksize: int | None = None, + **kwds, +) -> DataFrame | TextFileReader: + r""" + Read a table of fixed-width formatted lines into DataFrame. + + Also supports optionally iterating or breaking of the file + into chunks. + + Additional help can be found in the `online docs for IO Tools + `_. + + Parameters + ---------- + filepath_or_buffer : str, path object, or file-like object + String, path object (implementing ``os.PathLike[str]``), or file-like + object implementing a text ``read()`` function.The string could be a URL. + Valid URL schemes include http, ftp, s3, and file. For file URLs, a host is + expected. A local file could be: + ``file://localhost/path/to/table.csv``. + colspecs : list of tuple (int, int) or 'infer'. optional + A list of tuples giving the extents of the fixed-width + fields of each line as half-open intervals (i.e., [from, to[ ). + String value 'infer' can be used to instruct the parser to try + detecting the column specifications from the first 100 rows of + the data which are not being skipped via skiprows (default='infer'). + widths : list of int, optional + A list of field widths which can be used instead of 'colspecs' if + the intervals are contiguous. + infer_nrows : int, default 100 + The number of rows to consider when letting the parser determine the + `colspecs`. + dtype_backend : {'numpy_nullable', 'pyarrow'}, default 'numpy_nullable' + Back-end data type applied to the resultant :class:`DataFrame` + (still experimental). Behaviour is as follows: + + * ``"numpy_nullable"``: returns nullable-dtype-backed :class:`DataFrame` + (default). + * ``"pyarrow"``: returns pyarrow-backed nullable :class:`ArrowDtype` + DataFrame. + + .. versionadded:: 2.0 + + **kwds : optional + Optional keyword arguments can be passed to ``TextFileReader``. + + Returns + ------- + DataFrame or TextFileReader + A comma-separated values (csv) file is returned as two-dimensional + data structure with labeled axes. + + See Also + -------- + DataFrame.to_csv : Write DataFrame to a comma-separated values (csv) file. + read_csv : Read a comma-separated values (csv) file into DataFrame. + + Examples + -------- + >>> pd.read_fwf('data.csv') # doctest: +SKIP + """ + # Check input arguments. + if colspecs is None and widths is None: + raise ValueError("Must specify either colspecs or widths") + if colspecs not in (None, "infer") and widths is not None: + raise ValueError("You must specify only one of 'widths' and 'colspecs'") + + # Compute 'colspecs' from 'widths', if specified. + if widths is not None: + colspecs, col = [], 0 + for w in widths: + colspecs.append((col, col + w)) + col += w + + # for mypy + assert colspecs is not None + + # GH#40830 + # Ensure length of `colspecs` matches length of `names` + names = kwds.get("names") + if names is not None: + if len(names) != len(colspecs) and colspecs != "infer": + # need to check len(index_col) as it might contain + # unnamed indices, in which case it's name is not required + len_index = 0 + if kwds.get("index_col") is not None: + index_col: Any = kwds.get("index_col") + if index_col is not False: + if not is_list_like(index_col): + len_index = 1 + else: + len_index = len(index_col) + if kwds.get("usecols") is None and len(names) + len_index != len(colspecs): + # If usecols is used colspec may be longer than names + raise ValueError("Length of colspecs must match length of names") + + kwds["colspecs"] = colspecs + kwds["infer_nrows"] = infer_nrows + kwds["engine"] = "python-fwf" + kwds["iterator"] = iterator + kwds["chunksize"] = chunksize + + check_dtype_backend(dtype_backend) + kwds["dtype_backend"] = dtype_backend + return _read(filepath_or_buffer, kwds) + + +class TextFileReader(abc.Iterator): + """ + + Passed dialect overrides any of the related parser options + + """ + + def __init__( + self, + f: FilePath | ReadCsvBuffer[bytes] | ReadCsvBuffer[str] | list, + engine: CSVEngine | None = None, + **kwds, + ) -> None: + if engine is not None: + engine_specified = True + else: + engine = "python" + engine_specified = False + self.engine = engine + self._engine_specified = kwds.get("engine_specified", engine_specified) + + _validate_skipfooter(kwds) + + dialect = _extract_dialect(kwds) + if dialect is not None: + if engine == "pyarrow": + raise ValueError( + "The 'dialect' option is not supported with the 'pyarrow' engine" + ) + kwds = _merge_with_dialect_properties(dialect, kwds) + + if kwds.get("header", "infer") == "infer": + kwds["header"] = 0 if kwds.get("names") is None else None + + self.orig_options = kwds + + # miscellanea + self._currow = 0 + + options = self._get_options_with_defaults(engine) + options["storage_options"] = kwds.get("storage_options", None) + + self.chunksize = options.pop("chunksize", None) + self.nrows = options.pop("nrows", None) + + self._check_file_or_buffer(f, engine) + self.options, self.engine = self._clean_options(options, engine) + + if "has_index_names" in kwds: + self.options["has_index_names"] = kwds["has_index_names"] + + self.handles: IOHandles | None = None + self._engine = self._make_engine(f, self.engine) + + def close(self) -> None: + if self.handles is not None: + self.handles.close() + self._engine.close() + + def _get_options_with_defaults(self, engine: CSVEngine) -> dict[str, Any]: + kwds = self.orig_options + + options = {} + default: object | None + + for argname, default in parser_defaults.items(): + value = kwds.get(argname, default) + + # see gh-12935 + if ( + engine == "pyarrow" + and argname in _pyarrow_unsupported + and value != default + and value != getattr(value, "value", default) + ): + raise ValueError( + f"The {repr(argname)} option is not supported with the " + f"'pyarrow' engine" + ) + options[argname] = value + + for argname, default in _c_parser_defaults.items(): + if argname in kwds: + value = kwds[argname] + + if engine != "c" and value != default: + # TODO: Refactor this logic, its pretty convoluted + if "python" in engine and argname not in _python_unsupported: + pass + elif "pyarrow" in engine and argname not in _pyarrow_unsupported: + pass + else: + raise ValueError( + f"The {repr(argname)} option is not supported with the " + f"{repr(engine)} engine" + ) + else: + value = default + options[argname] = value + + if engine == "python-fwf": + for argname, default in _fwf_defaults.items(): + options[argname] = kwds.get(argname, default) + + return options + + def _check_file_or_buffer(self, f, engine: CSVEngine) -> None: + # see gh-16530 + if is_file_like(f) and engine != "c" and not hasattr(f, "__iter__"): + # The C engine doesn't need the file-like to have the "__iter__" + # attribute. However, the Python engine needs "__iter__(...)" + # when iterating through such an object, meaning it + # needs to have that attribute + raise ValueError( + "The 'python' engine cannot iterate through this file buffer." + ) + + def _clean_options( + self, options: dict[str, Any], engine: CSVEngine + ) -> tuple[dict[str, Any], CSVEngine]: + result = options.copy() + + fallback_reason = None + + # C engine not supported yet + if engine == "c": + if options["skipfooter"] > 0: + fallback_reason = "the 'c' engine does not support skipfooter" + engine = "python" + + sep = options["delimiter"] + delim_whitespace = options["delim_whitespace"] + + if sep is None and not delim_whitespace: + if engine in ("c", "pyarrow"): + fallback_reason = ( + f"the '{engine}' engine does not support " + "sep=None with delim_whitespace=False" + ) + engine = "python" + elif sep is not None and len(sep) > 1: + if engine == "c" and sep == r"\s+": + result["delim_whitespace"] = True + del result["delimiter"] + elif engine not in ("python", "python-fwf"): + # wait until regex engine integrated + fallback_reason = ( + f"the '{engine}' engine does not support " + "regex separators (separators > 1 char and " + r"different from '\s+' are interpreted as regex)" + ) + engine = "python" + elif delim_whitespace: + if "python" in engine: + result["delimiter"] = r"\s+" + elif sep is not None: + encodeable = True + encoding = sys.getfilesystemencoding() or "utf-8" + try: + if len(sep.encode(encoding)) > 1: + encodeable = False + except UnicodeDecodeError: + encodeable = False + if not encodeable and engine not in ("python", "python-fwf"): + fallback_reason = ( + f"the separator encoded in {encoding} " + f"is > 1 char long, and the '{engine}' engine " + "does not support such separators" + ) + engine = "python" + + quotechar = options["quotechar"] + if quotechar is not None and isinstance(quotechar, (str, bytes)): + if ( + len(quotechar) == 1 + and ord(quotechar) > 127 + and engine not in ("python", "python-fwf") + ): + fallback_reason = ( + "ord(quotechar) > 127, meaning the " + "quotechar is larger than one byte, " + f"and the '{engine}' engine does not support such quotechars" + ) + engine = "python" + + if fallback_reason and self._engine_specified: + raise ValueError(fallback_reason) + + if engine == "c": + for arg in _c_unsupported: + del result[arg] + + if "python" in engine: + for arg in _python_unsupported: + if fallback_reason and result[arg] != _c_parser_defaults.get(arg): + raise ValueError( + "Falling back to the 'python' engine because " + f"{fallback_reason}, but this causes {repr(arg)} to be " + "ignored as it is not supported by the 'python' engine." + ) + del result[arg] + + if fallback_reason: + warnings.warn( + ( + "Falling back to the 'python' engine because " + f"{fallback_reason}; you can avoid this warning by specifying " + "engine='python'." + ), + ParserWarning, + stacklevel=find_stack_level(), + ) + + index_col = options["index_col"] + names = options["names"] + converters = options["converters"] + na_values = options["na_values"] + skiprows = options["skiprows"] + + validate_header_arg(options["header"]) + + if index_col is True: + raise ValueError("The value of index_col couldn't be 'True'") + if is_index_col(index_col): + if not isinstance(index_col, (list, tuple, np.ndarray)): + index_col = [index_col] + result["index_col"] = index_col + + names = list(names) if names is not None else names + + # type conversion-related + if converters is not None: + if not isinstance(converters, dict): + raise TypeError( + "Type converters must be a dict or subclass, " + f"input was a {type(converters).__name__}" + ) + else: + converters = {} + + # Converting values to NA + keep_default_na = options["keep_default_na"] + floatify = engine != "pyarrow" + na_values, na_fvalues = _clean_na_values( + na_values, keep_default_na, floatify=floatify + ) + + # handle skiprows; this is internally handled by the + # c-engine, so only need for python and pyarrow parsers + if engine == "pyarrow": + if not is_integer(skiprows) and skiprows is not None: + # pyarrow expects skiprows to be passed as an integer + raise ValueError( + "skiprows argument must be an integer when using " + "engine='pyarrow'" + ) + else: + if is_integer(skiprows): + skiprows = list(range(skiprows)) + if skiprows is None: + skiprows = set() + elif not callable(skiprows): + skiprows = set(skiprows) + + # put stuff back + result["names"] = names + result["converters"] = converters + result["na_values"] = na_values + result["na_fvalues"] = na_fvalues + result["skiprows"] = skiprows + + return result, engine + + def __next__(self) -> DataFrame: + try: + return self.get_chunk() + except StopIteration: + self.close() + raise + + def _make_engine( + self, + f: FilePath | ReadCsvBuffer[bytes] | ReadCsvBuffer[str] | list | IO, + engine: CSVEngine = "c", + ) -> ParserBase: + mapping: dict[str, type[ParserBase]] = { + "c": CParserWrapper, + "python": PythonParser, + "pyarrow": ArrowParserWrapper, + "python-fwf": FixedWidthFieldParser, + } + if engine not in mapping: + raise ValueError( + f"Unknown engine: {engine} (valid options are {mapping.keys()})" + ) + if not isinstance(f, list): + # open file here + is_text = True + mode = "r" + if engine == "pyarrow": + is_text = False + mode = "rb" + elif ( + engine == "c" + and self.options.get("encoding", "utf-8") == "utf-8" + and isinstance(stringify_path(f), str) + ): + # c engine can decode utf-8 bytes, adding TextIOWrapper makes + # the c-engine especially for memory_map=True far slower + is_text = False + if "b" not in mode: + mode += "b" + self.handles = get_handle( + f, + mode, + encoding=self.options.get("encoding", None), + compression=self.options.get("compression", None), + memory_map=self.options.get("memory_map", False), + is_text=is_text, + errors=self.options.get("encoding_errors", "strict"), + storage_options=self.options.get("storage_options", None), + ) + assert self.handles is not None + f = self.handles.handle + + elif engine != "python": + msg = f"Invalid file path or buffer object type: {type(f)}" + raise ValueError(msg) + + try: + return mapping[engine](f, **self.options) + except Exception: + if self.handles is not None: + self.handles.close() + raise + + def _failover_to_python(self) -> None: + raise AbstractMethodError(self) + + def read(self, nrows: int | None = None) -> DataFrame: + if self.engine == "pyarrow": + try: + # error: "ParserBase" has no attribute "read" + df = self._engine.read() # type: ignore[attr-defined] + except Exception: + self.close() + raise + else: + nrows = validate_integer("nrows", nrows) + try: + # error: "ParserBase" has no attribute "read" + ( + index, + columns, + col_dict, + ) = self._engine.read( # type: ignore[attr-defined] + nrows + ) + except Exception: + self.close() + raise + + if index is None: + if col_dict: + # Any column is actually fine: + new_rows = len(next(iter(col_dict.values()))) + index = RangeIndex(self._currow, self._currow + new_rows) + else: + new_rows = 0 + else: + new_rows = len(index) + + if hasattr(self, "orig_options"): + dtype_arg = self.orig_options.get("dtype", None) + else: + dtype_arg = None + + if isinstance(dtype_arg, dict): + dtype = defaultdict(lambda: None) # type: ignore[var-annotated] + dtype.update(dtype_arg) + elif dtype_arg is not None and pandas_dtype(dtype_arg) in ( + np.str_, + np.object_, + ): + dtype = defaultdict(lambda: dtype_arg) + else: + dtype = None + + if dtype is not None: + new_col_dict = {} + for k, v in col_dict.items(): + d = ( + dtype[k] + if pandas_dtype(dtype[k]) in (np.str_, np.object_) + else None + ) + new_col_dict[k] = Series(v, index=index, dtype=d, copy=False) + else: + new_col_dict = col_dict + + df = DataFrame( + new_col_dict, + columns=columns, + index=index, + copy=not using_copy_on_write(), + ) + + self._currow += new_rows + return df + + def get_chunk(self, size: int | None = None) -> DataFrame: + if size is None: + size = self.chunksize + if self.nrows is not None: + if self._currow >= self.nrows: + raise StopIteration + size = min(size, self.nrows - self._currow) + return self.read(nrows=size) + + def __enter__(self) -> Self: + return self + + def __exit__( + self, + exc_type: type[BaseException] | None, + exc_value: BaseException | None, + traceback: TracebackType | None, + ) -> None: + self.close() + + +def TextParser(*args, **kwds) -> TextFileReader: + """ + Converts lists of lists/tuples into DataFrames with proper type inference + and optional (e.g. string to datetime) conversion. Also enables iterating + lazily over chunks of large files + + Parameters + ---------- + data : file-like object or list + delimiter : separator character to use + dialect : str or csv.Dialect instance, optional + Ignored if delimiter is longer than 1 character + names : sequence, default + header : int, default 0 + Row to use to parse column labels. Defaults to the first row. Prior + rows will be discarded + index_col : int or list, optional + Column or columns to use as the (possibly hierarchical) index + has_index_names: bool, default False + True if the cols defined in index_col have an index name and are + not in the header. + na_values : scalar, str, list-like, or dict, optional + Additional strings to recognize as NA/NaN. + keep_default_na : bool, default True + thousands : str, optional + Thousands separator + comment : str, optional + Comment out remainder of line + parse_dates : bool, default False + keep_date_col : bool, default False + date_parser : function, optional + + .. deprecated:: 2.0.0 + date_format : str or dict of column -> format, default ``None`` + + .. versionadded:: 2.0.0 + skiprows : list of integers + Row numbers to skip + skipfooter : int + Number of line at bottom of file to skip + converters : dict, optional + Dict of functions for converting values in certain columns. Keys can + either be integers or column labels, values are functions that take one + input argument, the cell (not column) content, and return the + transformed content. + encoding : str, optional + Encoding to use for UTF when reading/writing (ex. 'utf-8') + float_precision : str, optional + Specifies which converter the C engine should use for floating-point + values. The options are `None` or `high` for the ordinary converter, + `legacy` for the original lower precision pandas converter, and + `round_trip` for the round-trip converter. + """ + kwds["engine"] = "python" + return TextFileReader(*args, **kwds) + + +def _clean_na_values(na_values, keep_default_na: bool = True, floatify: bool = True): + na_fvalues: set | dict + if na_values is None: + if keep_default_na: + na_values = STR_NA_VALUES + else: + na_values = set() + na_fvalues = set() + elif isinstance(na_values, dict): + old_na_values = na_values.copy() + na_values = {} # Prevent aliasing. + + # Convert the values in the na_values dictionary + # into array-likes for further use. This is also + # where we append the default NaN values, provided + # that `keep_default_na=True`. + for k, v in old_na_values.items(): + if not is_list_like(v): + v = [v] + + if keep_default_na: + v = set(v) | STR_NA_VALUES + + na_values[k] = v + na_fvalues = {k: _floatify_na_values(v) for k, v in na_values.items()} + else: + if not is_list_like(na_values): + na_values = [na_values] + na_values = _stringify_na_values(na_values, floatify) + if keep_default_na: + na_values = na_values | STR_NA_VALUES + + na_fvalues = _floatify_na_values(na_values) + + return na_values, na_fvalues + + +def _floatify_na_values(na_values): + # create float versions of the na_values + result = set() + for v in na_values: + try: + v = float(v) + if not np.isnan(v): + result.add(v) + except (TypeError, ValueError, OverflowError): + pass + return result + + +def _stringify_na_values(na_values, floatify: bool): + """return a stringified and numeric for these values""" + result: list[str | float] = [] + for x in na_values: + result.append(str(x)) + result.append(x) + try: + v = float(x) + + # we are like 999 here + if v == int(v): + v = int(v) + result.append(f"{v}.0") + result.append(str(v)) + + if floatify: + result.append(v) + except (TypeError, ValueError, OverflowError): + pass + if floatify: + try: + result.append(int(x)) + except (TypeError, ValueError, OverflowError): + pass + return set(result) + + +def _refine_defaults_read( + dialect: str | csv.Dialect | None, + delimiter: str | None | lib.NoDefault, + delim_whitespace: bool, + engine: CSVEngine | None, + sep: str | None | lib.NoDefault, + on_bad_lines: str | Callable, + names: Sequence[Hashable] | None | lib.NoDefault, + defaults: dict[str, Any], + dtype_backend: DtypeBackend | lib.NoDefault, +): + """Validate/refine default values of input parameters of read_csv, read_table. + + Parameters + ---------- + dialect : str or csv.Dialect + If provided, this parameter will override values (default or not) for the + following parameters: `delimiter`, `doublequote`, `escapechar`, + `skipinitialspace`, `quotechar`, and `quoting`. If it is necessary to + override values, a ParserWarning will be issued. See csv.Dialect + documentation for more details. + delimiter : str or object + Alias for sep. + delim_whitespace : bool + Specifies whether or not whitespace (e.g. ``' '`` or ``'\t'``) will be + used as the sep. Equivalent to setting ``sep='\\s+'``. If this option + is set to True, nothing should be passed in for the ``delimiter`` + parameter. + + .. deprecated:: 2.2.0 + Use ``sep="\\s+"`` instead. + engine : {{'c', 'python'}} + Parser engine to use. The C engine is faster while the python engine is + currently more feature-complete. + sep : str or object + A delimiter provided by the user (str) or a sentinel value, i.e. + pandas._libs.lib.no_default. + on_bad_lines : str, callable + An option for handling bad lines or a sentinel value(None). + names : array-like, optional + List of column names to use. If the file contains a header row, + then you should explicitly pass ``header=0`` to override the column names. + Duplicates in this list are not allowed. + defaults: dict + Default values of input parameters. + + Returns + ------- + kwds : dict + Input parameters with correct values. + + Raises + ------ + ValueError : + If a delimiter was specified with ``sep`` (or ``delimiter``) and + ``delim_whitespace=True``. + """ + # fix types for sep, delimiter to Union(str, Any) + delim_default = defaults["delimiter"] + kwds: dict[str, Any] = {} + # gh-23761 + # + # When a dialect is passed, it overrides any of the overlapping + # parameters passed in directly. We don't want to warn if the + # default parameters were passed in (since it probably means + # that the user didn't pass them in explicitly in the first place). + # + # "delimiter" is the annoying corner case because we alias it to + # "sep" before doing comparison to the dialect values later on. + # Thus, we need a flag to indicate that we need to "override" + # the comparison to dialect values by checking if default values + # for BOTH "delimiter" and "sep" were provided. + if dialect is not None: + kwds["sep_override"] = delimiter is None and ( + sep is lib.no_default or sep == delim_default + ) + + if delimiter and (sep is not lib.no_default): + raise ValueError("Specified a sep and a delimiter; you can only specify one.") + + kwds["names"] = None if names is lib.no_default else names + + # Alias sep -> delimiter. + if delimiter is None: + delimiter = sep + + if delim_whitespace and (delimiter is not lib.no_default): + raise ValueError( + "Specified a delimiter with both sep and " + "delim_whitespace=True; you can only specify one." + ) + + if delimiter == "\n": + raise ValueError( + r"Specified \n as separator or delimiter. This forces the python engine " + "which does not accept a line terminator. Hence it is not allowed to use " + "the line terminator as separator.", + ) + + if delimiter is lib.no_default: + # assign default separator value + kwds["delimiter"] = delim_default + else: + kwds["delimiter"] = delimiter + + if engine is not None: + kwds["engine_specified"] = True + else: + kwds["engine"] = "c" + kwds["engine_specified"] = False + + if on_bad_lines == "error": + kwds["on_bad_lines"] = ParserBase.BadLineHandleMethod.ERROR + elif on_bad_lines == "warn": + kwds["on_bad_lines"] = ParserBase.BadLineHandleMethod.WARN + elif on_bad_lines == "skip": + kwds["on_bad_lines"] = ParserBase.BadLineHandleMethod.SKIP + elif callable(on_bad_lines): + if engine not in ["python", "pyarrow"]: + raise ValueError( + "on_bad_line can only be a callable function " + "if engine='python' or 'pyarrow'" + ) + kwds["on_bad_lines"] = on_bad_lines + else: + raise ValueError(f"Argument {on_bad_lines} is invalid for on_bad_lines") + + check_dtype_backend(dtype_backend) + + kwds["dtype_backend"] = dtype_backend + + return kwds + + +def _extract_dialect(kwds: dict[str, Any]) -> csv.Dialect | None: + """ + Extract concrete csv dialect instance. + + Returns + ------- + csv.Dialect or None + """ + if kwds.get("dialect") is None: + return None + + dialect = kwds["dialect"] + if dialect in csv.list_dialects(): + dialect = csv.get_dialect(dialect) + + _validate_dialect(dialect) + + return dialect + + +MANDATORY_DIALECT_ATTRS = ( + "delimiter", + "doublequote", + "escapechar", + "skipinitialspace", + "quotechar", + "quoting", +) + + +def _validate_dialect(dialect: csv.Dialect) -> None: + """ + Validate csv dialect instance. + + Raises + ------ + ValueError + If incorrect dialect is provided. + """ + for param in MANDATORY_DIALECT_ATTRS: + if not hasattr(dialect, param): + raise ValueError(f"Invalid dialect {dialect} provided") + + +def _merge_with_dialect_properties( + dialect: csv.Dialect, + defaults: dict[str, Any], +) -> dict[str, Any]: + """ + Merge default kwargs in TextFileReader with dialect parameters. + + Parameters + ---------- + dialect : csv.Dialect + Concrete csv dialect. See csv.Dialect documentation for more details. + defaults : dict + Keyword arguments passed to TextFileReader. + + Returns + ------- + kwds : dict + Updated keyword arguments, merged with dialect parameters. + """ + kwds = defaults.copy() + + for param in MANDATORY_DIALECT_ATTRS: + dialect_val = getattr(dialect, param) + + parser_default = parser_defaults[param] + provided = kwds.get(param, parser_default) + + # Messages for conflicting values between the dialect + # instance and the actual parameters provided. + conflict_msgs = [] + + # Don't warn if the default parameter was passed in, + # even if it conflicts with the dialect (gh-23761). + if provided not in (parser_default, dialect_val): + msg = ( + f"Conflicting values for '{param}': '{provided}' was " + f"provided, but the dialect specifies '{dialect_val}'. " + "Using the dialect-specified value." + ) + + # Annoying corner case for not warning about + # conflicts between dialect and delimiter parameter. + # Refer to the outer "_read_" function for more info. + if not (param == "delimiter" and kwds.pop("sep_override", False)): + conflict_msgs.append(msg) + + if conflict_msgs: + warnings.warn( + "\n\n".join(conflict_msgs), ParserWarning, stacklevel=find_stack_level() + ) + kwds[param] = dialect_val + return kwds + + +def _validate_skipfooter(kwds: dict[str, Any]) -> None: + """ + Check whether skipfooter is compatible with other kwargs in TextFileReader. + + Parameters + ---------- + kwds : dict + Keyword arguments passed to TextFileReader. + + Raises + ------ + ValueError + If skipfooter is not compatible with other parameters. + """ + if kwds.get("skipfooter"): + if kwds.get("iterator") or kwds.get("chunksize"): + raise ValueError("'skipfooter' not supported for iteration") + if kwds.get("nrows"): + raise ValueError("'skipfooter' not supported with 'nrows'") diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/sas/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/sas/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..317730745b6e3a0278a48b7bb810cf43e718e787 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/sas/__init__.py @@ -0,0 +1,3 @@ +from pandas.io.sas.sasreader import read_sas + +__all__ = ["read_sas"] diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/sas/sas7bdat.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/sas/sas7bdat.py new file mode 100644 index 0000000000000000000000000000000000000000..1d424425cd927784ea2f16c41f635d71143995f9 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/sas/sas7bdat.py @@ -0,0 +1,762 @@ +""" +Read SAS7BDAT files + +Based on code written by Jared Hobbs: + https://bitbucket.org/jaredhobbs/sas7bdat + +See also: + https://github.com/BioStatMatt/sas7bdat + +Partial documentation of the file format: + https://cran.r-project.org/package=sas7bdat/vignettes/sas7bdat.pdf + +Reference for binary data compression: + http://collaboration.cmc.ec.gc.ca/science/rpn/biblio/ddj/Website/articles/CUJ/1992/9210/ross/ross.htm +""" +from __future__ import annotations + +from collections import abc +from datetime import ( + datetime, + timedelta, +) +import sys +from typing import TYPE_CHECKING + +import numpy as np + +from pandas._config import get_option + +from pandas._libs.byteswap import ( + read_double_with_byteswap, + read_float_with_byteswap, + read_uint16_with_byteswap, + read_uint32_with_byteswap, + read_uint64_with_byteswap, +) +from pandas._libs.sas import ( + Parser, + get_subheader_index, +) +from pandas._libs.tslibs.conversion import cast_from_unit_vectorized +from pandas.errors import EmptyDataError + +import pandas as pd +from pandas import ( + DataFrame, + Timestamp, + isna, +) + +from pandas.io.common import get_handle +import pandas.io.sas.sas_constants as const +from pandas.io.sas.sasreader import ReaderBase + +if TYPE_CHECKING: + from pandas._typing import ( + CompressionOptions, + FilePath, + ReadBuffer, + ) + + +_unix_origin = Timestamp("1970-01-01") +_sas_origin = Timestamp("1960-01-01") + + +def _parse_datetime(sas_datetime: float, unit: str): + if isna(sas_datetime): + return pd.NaT + + if unit == "s": + return datetime(1960, 1, 1) + timedelta(seconds=sas_datetime) + + elif unit == "d": + return datetime(1960, 1, 1) + timedelta(days=sas_datetime) + + else: + raise ValueError("unit must be 'd' or 's'") + + +def _convert_datetimes(sas_datetimes: pd.Series, unit: str) -> pd.Series: + """ + Convert to Timestamp if possible, otherwise to datetime.datetime. + SAS float64 lacks precision for more than ms resolution so the fit + to datetime.datetime is ok. + + Parameters + ---------- + sas_datetimes : {Series, Sequence[float]} + Dates or datetimes in SAS + unit : {'d', 's'} + "d" if the floats represent dates, "s" for datetimes + + Returns + ------- + Series + Series of datetime64 dtype or datetime.datetime. + """ + td = (_sas_origin - _unix_origin).as_unit("s") + if unit == "s": + millis = cast_from_unit_vectorized( + sas_datetimes._values, unit="s", out_unit="ms" + ) + dt64ms = millis.view("M8[ms]") + td + return pd.Series(dt64ms, index=sas_datetimes.index, copy=False) + else: + vals = np.array(sas_datetimes, dtype="M8[D]") + td + return pd.Series(vals, dtype="M8[s]", index=sas_datetimes.index, copy=False) + + +class _Column: + col_id: int + name: str | bytes + label: str | bytes + format: str | bytes + ctype: bytes + length: int + + def __init__( + self, + col_id: int, + # These can be bytes when convert_header_text is False + name: str | bytes, + label: str | bytes, + format: str | bytes, + ctype: bytes, + length: int, + ) -> None: + self.col_id = col_id + self.name = name + self.label = label + self.format = format + self.ctype = ctype + self.length = length + + +# SAS7BDAT represents a SAS data file in SAS7BDAT format. +class SAS7BDATReader(ReaderBase, abc.Iterator): + """ + Read SAS files in SAS7BDAT format. + + Parameters + ---------- + path_or_buf : path name or buffer + Name of SAS file or file-like object pointing to SAS file + contents. + index : column identifier, defaults to None + Column to use as index. + convert_dates : bool, defaults to True + Attempt to convert dates to Pandas datetime values. Note that + some rarely used SAS date formats may be unsupported. + blank_missing : bool, defaults to True + Convert empty strings to missing values (SAS uses blanks to + indicate missing character variables). + chunksize : int, defaults to None + Return SAS7BDATReader object for iterations, returns chunks + with given number of lines. + encoding : str, 'infer', defaults to None + String encoding acc. to Python standard encodings, + encoding='infer' tries to detect the encoding from the file header, + encoding=None will leave the data in binary format. + convert_text : bool, defaults to True + If False, text variables are left as raw bytes. + convert_header_text : bool, defaults to True + If False, header text, including column names, are left as raw + bytes. + """ + + _int_length: int + _cached_page: bytes | None + + def __init__( + self, + path_or_buf: FilePath | ReadBuffer[bytes], + index=None, + convert_dates: bool = True, + blank_missing: bool = True, + chunksize: int | None = None, + encoding: str | None = None, + convert_text: bool = True, + convert_header_text: bool = True, + compression: CompressionOptions = "infer", + ) -> None: + self.index = index + self.convert_dates = convert_dates + self.blank_missing = blank_missing + self.chunksize = chunksize + self.encoding = encoding + self.convert_text = convert_text + self.convert_header_text = convert_header_text + + self.default_encoding = "latin-1" + self.compression = b"" + self.column_names_raw: list[bytes] = [] + self.column_names: list[str | bytes] = [] + self.column_formats: list[str | bytes] = [] + self.columns: list[_Column] = [] + + self._current_page_data_subheader_pointers: list[tuple[int, int]] = [] + self._cached_page = None + self._column_data_lengths: list[int] = [] + self._column_data_offsets: list[int] = [] + self._column_types: list[bytes] = [] + + self._current_row_in_file_index = 0 + self._current_row_on_page_index = 0 + self._current_row_in_file_index = 0 + + self.handles = get_handle( + path_or_buf, "rb", is_text=False, compression=compression + ) + + self._path_or_buf = self.handles.handle + + # Same order as const.SASIndex + self._subheader_processors = [ + self._process_rowsize_subheader, + self._process_columnsize_subheader, + self._process_subheader_counts, + self._process_columntext_subheader, + self._process_columnname_subheader, + self._process_columnattributes_subheader, + self._process_format_subheader, + self._process_columnlist_subheader, + None, # Data + ] + + try: + self._get_properties() + self._parse_metadata() + except Exception: + self.close() + raise + + def column_data_lengths(self) -> np.ndarray: + """Return a numpy int64 array of the column data lengths""" + return np.asarray(self._column_data_lengths, dtype=np.int64) + + def column_data_offsets(self) -> np.ndarray: + """Return a numpy int64 array of the column offsets""" + return np.asarray(self._column_data_offsets, dtype=np.int64) + + def column_types(self) -> np.ndarray: + """ + Returns a numpy character array of the column types: + s (string) or d (double) + """ + return np.asarray(self._column_types, dtype=np.dtype("S1")) + + def close(self) -> None: + self.handles.close() + + def _get_properties(self) -> None: + # Check magic number + self._path_or_buf.seek(0) + self._cached_page = self._path_or_buf.read(288) + if self._cached_page[0 : len(const.magic)] != const.magic: + raise ValueError("magic number mismatch (not a SAS file?)") + + # Get alignment information + buf = self._read_bytes(const.align_1_offset, const.align_1_length) + if buf == const.u64_byte_checker_value: + self.U64 = True + self._int_length = 8 + self._page_bit_offset = const.page_bit_offset_x64 + self._subheader_pointer_length = const.subheader_pointer_length_x64 + else: + self.U64 = False + self._page_bit_offset = const.page_bit_offset_x86 + self._subheader_pointer_length = const.subheader_pointer_length_x86 + self._int_length = 4 + buf = self._read_bytes(const.align_2_offset, const.align_2_length) + if buf == const.align_1_checker_value: + align1 = const.align_2_value + else: + align1 = 0 + + # Get endianness information + buf = self._read_bytes(const.endianness_offset, const.endianness_length) + if buf == b"\x01": + self.byte_order = "<" + self.need_byteswap = sys.byteorder == "big" + else: + self.byte_order = ">" + self.need_byteswap = sys.byteorder == "little" + + # Get encoding information + buf = self._read_bytes(const.encoding_offset, const.encoding_length)[0] + if buf in const.encoding_names: + self.inferred_encoding = const.encoding_names[buf] + if self.encoding == "infer": + self.encoding = self.inferred_encoding + else: + self.inferred_encoding = f"unknown (code={buf})" + + # Timestamp is epoch 01/01/1960 + epoch = datetime(1960, 1, 1) + x = self._read_float( + const.date_created_offset + align1, const.date_created_length + ) + self.date_created = epoch + pd.to_timedelta(x, unit="s") + x = self._read_float( + const.date_modified_offset + align1, const.date_modified_length + ) + self.date_modified = epoch + pd.to_timedelta(x, unit="s") + + self.header_length = self._read_uint( + const.header_size_offset + align1, const.header_size_length + ) + + # Read the rest of the header into cached_page. + buf = self._path_or_buf.read(self.header_length - 288) + self._cached_page += buf + # error: Argument 1 to "len" has incompatible type "Optional[bytes]"; + # expected "Sized" + if len(self._cached_page) != self.header_length: # type: ignore[arg-type] + raise ValueError("The SAS7BDAT file appears to be truncated.") + + self._page_length = self._read_uint( + const.page_size_offset + align1, const.page_size_length + ) + + def __next__(self) -> DataFrame: + da = self.read(nrows=self.chunksize or 1) + if da.empty: + self.close() + raise StopIteration + return da + + # Read a single float of the given width (4 or 8). + def _read_float(self, offset: int, width: int): + assert self._cached_page is not None + if width == 4: + return read_float_with_byteswap( + self._cached_page, offset, self.need_byteswap + ) + elif width == 8: + return read_double_with_byteswap( + self._cached_page, offset, self.need_byteswap + ) + else: + self.close() + raise ValueError("invalid float width") + + # Read a single unsigned integer of the given width (1, 2, 4 or 8). + def _read_uint(self, offset: int, width: int) -> int: + assert self._cached_page is not None + if width == 1: + return self._read_bytes(offset, 1)[0] + elif width == 2: + return read_uint16_with_byteswap( + self._cached_page, offset, self.need_byteswap + ) + elif width == 4: + return read_uint32_with_byteswap( + self._cached_page, offset, self.need_byteswap + ) + elif width == 8: + return read_uint64_with_byteswap( + self._cached_page, offset, self.need_byteswap + ) + else: + self.close() + raise ValueError("invalid int width") + + def _read_bytes(self, offset: int, length: int): + assert self._cached_page is not None + if offset + length > len(self._cached_page): + self.close() + raise ValueError("The cached page is too small.") + return self._cached_page[offset : offset + length] + + def _read_and_convert_header_text(self, offset: int, length: int) -> str | bytes: + return self._convert_header_text( + self._read_bytes(offset, length).rstrip(b"\x00 ") + ) + + def _parse_metadata(self) -> None: + done = False + while not done: + self._cached_page = self._path_or_buf.read(self._page_length) + if len(self._cached_page) <= 0: + break + if len(self._cached_page) != self._page_length: + raise ValueError("Failed to read a meta data page from the SAS file.") + done = self._process_page_meta() + + def _process_page_meta(self) -> bool: + self._read_page_header() + pt = const.page_meta_types + [const.page_amd_type, const.page_mix_type] + if self._current_page_type in pt: + self._process_page_metadata() + is_data_page = self._current_page_type == const.page_data_type + is_mix_page = self._current_page_type == const.page_mix_type + return bool( + is_data_page + or is_mix_page + or self._current_page_data_subheader_pointers != [] + ) + + def _read_page_header(self) -> None: + bit_offset = self._page_bit_offset + tx = const.page_type_offset + bit_offset + self._current_page_type = ( + self._read_uint(tx, const.page_type_length) & const.page_type_mask2 + ) + tx = const.block_count_offset + bit_offset + self._current_page_block_count = self._read_uint(tx, const.block_count_length) + tx = const.subheader_count_offset + bit_offset + self._current_page_subheaders_count = self._read_uint( + tx, const.subheader_count_length + ) + + def _process_page_metadata(self) -> None: + bit_offset = self._page_bit_offset + + for i in range(self._current_page_subheaders_count): + offset = const.subheader_pointers_offset + bit_offset + total_offset = offset + self._subheader_pointer_length * i + + subheader_offset = self._read_uint(total_offset, self._int_length) + total_offset += self._int_length + + subheader_length = self._read_uint(total_offset, self._int_length) + total_offset += self._int_length + + subheader_compression = self._read_uint(total_offset, 1) + total_offset += 1 + + subheader_type = self._read_uint(total_offset, 1) + + if ( + subheader_length == 0 + or subheader_compression == const.truncated_subheader_id + ): + continue + + subheader_signature = self._read_bytes(subheader_offset, self._int_length) + subheader_index = get_subheader_index(subheader_signature) + subheader_processor = self._subheader_processors[subheader_index] + + if subheader_processor is None: + f1 = subheader_compression in (const.compressed_subheader_id, 0) + f2 = subheader_type == const.compressed_subheader_type + if self.compression and f1 and f2: + self._current_page_data_subheader_pointers.append( + (subheader_offset, subheader_length) + ) + else: + self.close() + raise ValueError( + f"Unknown subheader signature {subheader_signature}" + ) + else: + subheader_processor(subheader_offset, subheader_length) + + def _process_rowsize_subheader(self, offset: int, length: int) -> None: + int_len = self._int_length + lcs_offset = offset + lcp_offset = offset + if self.U64: + lcs_offset += 682 + lcp_offset += 706 + else: + lcs_offset += 354 + lcp_offset += 378 + + self.row_length = self._read_uint( + offset + const.row_length_offset_multiplier * int_len, + int_len, + ) + self.row_count = self._read_uint( + offset + const.row_count_offset_multiplier * int_len, + int_len, + ) + self.col_count_p1 = self._read_uint( + offset + const.col_count_p1_multiplier * int_len, int_len + ) + self.col_count_p2 = self._read_uint( + offset + const.col_count_p2_multiplier * int_len, int_len + ) + mx = const.row_count_on_mix_page_offset_multiplier * int_len + self._mix_page_row_count = self._read_uint(offset + mx, int_len) + self._lcs = self._read_uint(lcs_offset, 2) + self._lcp = self._read_uint(lcp_offset, 2) + + def _process_columnsize_subheader(self, offset: int, length: int) -> None: + int_len = self._int_length + offset += int_len + self.column_count = self._read_uint(offset, int_len) + if self.col_count_p1 + self.col_count_p2 != self.column_count: + print( + f"Warning: column count mismatch ({self.col_count_p1} + " + f"{self.col_count_p2} != {self.column_count})\n" + ) + + # Unknown purpose + def _process_subheader_counts(self, offset: int, length: int) -> None: + pass + + def _process_columntext_subheader(self, offset: int, length: int) -> None: + offset += self._int_length + text_block_size = self._read_uint(offset, const.text_block_size_length) + + buf = self._read_bytes(offset, text_block_size) + cname_raw = buf[0:text_block_size].rstrip(b"\x00 ") + self.column_names_raw.append(cname_raw) + + if len(self.column_names_raw) == 1: + compression_literal = b"" + for cl in const.compression_literals: + if cl in cname_raw: + compression_literal = cl + self.compression = compression_literal + offset -= self._int_length + + offset1 = offset + 16 + if self.U64: + offset1 += 4 + + buf = self._read_bytes(offset1, self._lcp) + compression_literal = buf.rstrip(b"\x00") + if compression_literal == b"": + self._lcs = 0 + offset1 = offset + 32 + if self.U64: + offset1 += 4 + buf = self._read_bytes(offset1, self._lcp) + self.creator_proc = buf[0 : self._lcp] + elif compression_literal == const.rle_compression: + offset1 = offset + 40 + if self.U64: + offset1 += 4 + buf = self._read_bytes(offset1, self._lcp) + self.creator_proc = buf[0 : self._lcp] + elif self._lcs > 0: + self._lcp = 0 + offset1 = offset + 16 + if self.U64: + offset1 += 4 + buf = self._read_bytes(offset1, self._lcs) + self.creator_proc = buf[0 : self._lcp] + if hasattr(self, "creator_proc"): + self.creator_proc = self._convert_header_text(self.creator_proc) + + def _process_columnname_subheader(self, offset: int, length: int) -> None: + int_len = self._int_length + offset += int_len + column_name_pointers_count = (length - 2 * int_len - 12) // 8 + for i in range(column_name_pointers_count): + text_subheader = ( + offset + + const.column_name_pointer_length * (i + 1) + + const.column_name_text_subheader_offset + ) + col_name_offset = ( + offset + + const.column_name_pointer_length * (i + 1) + + const.column_name_offset_offset + ) + col_name_length = ( + offset + + const.column_name_pointer_length * (i + 1) + + const.column_name_length_offset + ) + + idx = self._read_uint( + text_subheader, const.column_name_text_subheader_length + ) + col_offset = self._read_uint( + col_name_offset, const.column_name_offset_length + ) + col_len = self._read_uint(col_name_length, const.column_name_length_length) + + name_raw = self.column_names_raw[idx] + cname = name_raw[col_offset : col_offset + col_len] + self.column_names.append(self._convert_header_text(cname)) + + def _process_columnattributes_subheader(self, offset: int, length: int) -> None: + int_len = self._int_length + column_attributes_vectors_count = (length - 2 * int_len - 12) // (int_len + 8) + for i in range(column_attributes_vectors_count): + col_data_offset = ( + offset + int_len + const.column_data_offset_offset + i * (int_len + 8) + ) + col_data_len = ( + offset + + 2 * int_len + + const.column_data_length_offset + + i * (int_len + 8) + ) + col_types = ( + offset + 2 * int_len + const.column_type_offset + i * (int_len + 8) + ) + + x = self._read_uint(col_data_offset, int_len) + self._column_data_offsets.append(x) + + x = self._read_uint(col_data_len, const.column_data_length_length) + self._column_data_lengths.append(x) + + x = self._read_uint(col_types, const.column_type_length) + self._column_types.append(b"d" if x == 1 else b"s") + + def _process_columnlist_subheader(self, offset: int, length: int) -> None: + # unknown purpose + pass + + def _process_format_subheader(self, offset: int, length: int) -> None: + int_len = self._int_length + text_subheader_format = ( + offset + const.column_format_text_subheader_index_offset + 3 * int_len + ) + col_format_offset = offset + const.column_format_offset_offset + 3 * int_len + col_format_len = offset + const.column_format_length_offset + 3 * int_len + text_subheader_label = ( + offset + const.column_label_text_subheader_index_offset + 3 * int_len + ) + col_label_offset = offset + const.column_label_offset_offset + 3 * int_len + col_label_len = offset + const.column_label_length_offset + 3 * int_len + + x = self._read_uint( + text_subheader_format, const.column_format_text_subheader_index_length + ) + format_idx = min(x, len(self.column_names_raw) - 1) + + format_start = self._read_uint( + col_format_offset, const.column_format_offset_length + ) + format_len = self._read_uint(col_format_len, const.column_format_length_length) + + label_idx = self._read_uint( + text_subheader_label, const.column_label_text_subheader_index_length + ) + label_idx = min(label_idx, len(self.column_names_raw) - 1) + + label_start = self._read_uint( + col_label_offset, const.column_label_offset_length + ) + label_len = self._read_uint(col_label_len, const.column_label_length_length) + + label_names = self.column_names_raw[label_idx] + column_label = self._convert_header_text( + label_names[label_start : label_start + label_len] + ) + format_names = self.column_names_raw[format_idx] + column_format = self._convert_header_text( + format_names[format_start : format_start + format_len] + ) + current_column_number = len(self.columns) + + col = _Column( + current_column_number, + self.column_names[current_column_number], + column_label, + column_format, + self._column_types[current_column_number], + self._column_data_lengths[current_column_number], + ) + + self.column_formats.append(column_format) + self.columns.append(col) + + def read(self, nrows: int | None = None) -> DataFrame: + if (nrows is None) and (self.chunksize is not None): + nrows = self.chunksize + elif nrows is None: + nrows = self.row_count + + if len(self._column_types) == 0: + self.close() + raise EmptyDataError("No columns to parse from file") + + if nrows > 0 and self._current_row_in_file_index >= self.row_count: + return DataFrame() + + nrows = min(nrows, self.row_count - self._current_row_in_file_index) + + nd = self._column_types.count(b"d") + ns = self._column_types.count(b"s") + + self._string_chunk = np.empty((ns, nrows), dtype=object) + self._byte_chunk = np.zeros((nd, 8 * nrows), dtype=np.uint8) + + self._current_row_in_chunk_index = 0 + p = Parser(self) + p.read(nrows) + + rslt = self._chunk_to_dataframe() + if self.index is not None: + rslt = rslt.set_index(self.index) + + return rslt + + def _read_next_page(self): + self._current_page_data_subheader_pointers = [] + self._cached_page = self._path_or_buf.read(self._page_length) + if len(self._cached_page) <= 0: + return True + elif len(self._cached_page) != self._page_length: + self.close() + msg = ( + "failed to read complete page from file (read " + f"{len(self._cached_page):d} of {self._page_length:d} bytes)" + ) + raise ValueError(msg) + + self._read_page_header() + if self._current_page_type in const.page_meta_types: + self._process_page_metadata() + + if self._current_page_type not in const.page_meta_types + [ + const.page_data_type, + const.page_mix_type, + ]: + return self._read_next_page() + + return False + + def _chunk_to_dataframe(self) -> DataFrame: + n = self._current_row_in_chunk_index + m = self._current_row_in_file_index + ix = range(m - n, m) + rslt = {} + + js, jb = 0, 0 + infer_string = get_option("future.infer_string") + for j in range(self.column_count): + name = self.column_names[j] + + if self._column_types[j] == b"d": + col_arr = self._byte_chunk[jb, :].view(dtype=self.byte_order + "d") + rslt[name] = pd.Series(col_arr, dtype=np.float64, index=ix, copy=False) + if self.convert_dates: + if self.column_formats[j] in const.sas_date_formats: + rslt[name] = _convert_datetimes(rslt[name], "d") + elif self.column_formats[j] in const.sas_datetime_formats: + rslt[name] = _convert_datetimes(rslt[name], "s") + jb += 1 + elif self._column_types[j] == b"s": + rslt[name] = pd.Series(self._string_chunk[js, :], index=ix, copy=False) + if self.convert_text and (self.encoding is not None): + rslt[name] = self._decode_string(rslt[name].str) + if infer_string: + rslt[name] = rslt[name].astype("str") + + js += 1 + else: + self.close() + raise ValueError(f"unknown column type {repr(self._column_types[j])}") + + df = DataFrame(rslt, columns=self.column_names, index=ix, copy=False) + return df + + def _decode_string(self, b): + return b.decode(self.encoding or self.default_encoding) + + def _convert_header_text(self, b: bytes) -> str | bytes: + if self.convert_header_text: + return self._decode_string(b) + else: + return b diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/sas/sas_constants.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/sas/sas_constants.py new file mode 100644 index 0000000000000000000000000000000000000000..62c17bd03927e5f852af708e6b9ef6cf7e74d57c --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/sas/sas_constants.py @@ -0,0 +1,310 @@ +from __future__ import annotations + +from typing import Final + +magic: Final = ( + b"\x00\x00\x00\x00\x00\x00\x00\x00" + b"\x00\x00\x00\x00\xc2\xea\x81\x60" + b"\xb3\x14\x11\xcf\xbd\x92\x08\x00" + b"\x09\xc7\x31\x8c\x18\x1f\x10\x11" +) + +align_1_checker_value: Final = b"3" +align_1_offset: Final = 32 +align_1_length: Final = 1 +align_1_value: Final = 4 +u64_byte_checker_value: Final = b"3" +align_2_offset: Final = 35 +align_2_length: Final = 1 +align_2_value: Final = 4 +endianness_offset: Final = 37 +endianness_length: Final = 1 +platform_offset: Final = 39 +platform_length: Final = 1 +encoding_offset: Final = 70 +encoding_length: Final = 1 +dataset_offset: Final = 92 +dataset_length: Final = 64 +file_type_offset: Final = 156 +file_type_length: Final = 8 +date_created_offset: Final = 164 +date_created_length: Final = 8 +date_modified_offset: Final = 172 +date_modified_length: Final = 8 +header_size_offset: Final = 196 +header_size_length: Final = 4 +page_size_offset: Final = 200 +page_size_length: Final = 4 +page_count_offset: Final = 204 +page_count_length: Final = 4 +sas_release_offset: Final = 216 +sas_release_length: Final = 8 +sas_server_type_offset: Final = 224 +sas_server_type_length: Final = 16 +os_version_number_offset: Final = 240 +os_version_number_length: Final = 16 +os_maker_offset: Final = 256 +os_maker_length: Final = 16 +os_name_offset: Final = 272 +os_name_length: Final = 16 +page_bit_offset_x86: Final = 16 +page_bit_offset_x64: Final = 32 +subheader_pointer_length_x86: Final = 12 +subheader_pointer_length_x64: Final = 24 +page_type_offset: Final = 0 +page_type_length: Final = 2 +block_count_offset: Final = 2 +block_count_length: Final = 2 +subheader_count_offset: Final = 4 +subheader_count_length: Final = 2 +page_type_mask: Final = 0x0F00 +# Keep "page_comp_type" bits +page_type_mask2: Final = 0xF000 | page_type_mask +page_meta_type: Final = 0x0000 +page_data_type: Final = 0x0100 +page_mix_type: Final = 0x0200 +page_amd_type: Final = 0x0400 +page_meta2_type: Final = 0x4000 +page_comp_type: Final = 0x9000 +page_meta_types: Final = [page_meta_type, page_meta2_type] +subheader_pointers_offset: Final = 8 +truncated_subheader_id: Final = 1 +compressed_subheader_id: Final = 4 +compressed_subheader_type: Final = 1 +text_block_size_length: Final = 2 +row_length_offset_multiplier: Final = 5 +row_count_offset_multiplier: Final = 6 +col_count_p1_multiplier: Final = 9 +col_count_p2_multiplier: Final = 10 +row_count_on_mix_page_offset_multiplier: Final = 15 +column_name_pointer_length: Final = 8 +column_name_text_subheader_offset: Final = 0 +column_name_text_subheader_length: Final = 2 +column_name_offset_offset: Final = 2 +column_name_offset_length: Final = 2 +column_name_length_offset: Final = 4 +column_name_length_length: Final = 2 +column_data_offset_offset: Final = 8 +column_data_length_offset: Final = 8 +column_data_length_length: Final = 4 +column_type_offset: Final = 14 +column_type_length: Final = 1 +column_format_text_subheader_index_offset: Final = 22 +column_format_text_subheader_index_length: Final = 2 +column_format_offset_offset: Final = 24 +column_format_offset_length: Final = 2 +column_format_length_offset: Final = 26 +column_format_length_length: Final = 2 +column_label_text_subheader_index_offset: Final = 28 +column_label_text_subheader_index_length: Final = 2 +column_label_offset_offset: Final = 30 +column_label_offset_length: Final = 2 +column_label_length_offset: Final = 32 +column_label_length_length: Final = 2 +rle_compression: Final = b"SASYZCRL" +rdc_compression: Final = b"SASYZCR2" + +compression_literals: Final = [rle_compression, rdc_compression] + +# Incomplete list of encodings, using SAS nomenclature: +# https://support.sas.com/documentation/onlinedoc/dfdmstudio/2.6/dmpdmsug/Content/dfU_Encodings_SAS.html +# corresponding to the Python documentation of standard encodings +# https://docs.python.org/3/library/codecs.html#standard-encodings +encoding_names: Final = { + 20: "utf-8", + 29: "latin1", + 30: "latin2", + 31: "latin3", + 32: "latin4", + 33: "cyrillic", + 34: "arabic", + 35: "greek", + 36: "hebrew", + 37: "latin5", + 38: "latin6", + 39: "cp874", + 40: "latin9", + 41: "cp437", + 42: "cp850", + 43: "cp852", + 44: "cp857", + 45: "cp858", + 46: "cp862", + 47: "cp864", + 48: "cp865", + 49: "cp866", + 50: "cp869", + 51: "cp874", + # 52: "", # not found + # 53: "", # not found + # 54: "", # not found + 55: "cp720", + 56: "cp737", + 57: "cp775", + 58: "cp860", + 59: "cp863", + 60: "cp1250", + 61: "cp1251", + 62: "cp1252", + 63: "cp1253", + 64: "cp1254", + 65: "cp1255", + 66: "cp1256", + 67: "cp1257", + 68: "cp1258", + 118: "cp950", + # 119: "", # not found + 123: "big5", + 125: "gb2312", + 126: "cp936", + 134: "euc_jp", + 136: "cp932", + 138: "shift_jis", + 140: "euc-kr", + 141: "cp949", + 227: "latin8", + # 228: "", # not found + # 229: "" # not found +} + + +class SASIndex: + row_size_index: Final = 0 + column_size_index: Final = 1 + subheader_counts_index: Final = 2 + column_text_index: Final = 3 + column_name_index: Final = 4 + column_attributes_index: Final = 5 + format_and_label_index: Final = 6 + column_list_index: Final = 7 + data_subheader_index: Final = 8 + + +subheader_signature_to_index: Final = { + b"\xF7\xF7\xF7\xF7": SASIndex.row_size_index, + b"\x00\x00\x00\x00\xF7\xF7\xF7\xF7": SASIndex.row_size_index, + b"\xF7\xF7\xF7\xF7\x00\x00\x00\x00": SASIndex.row_size_index, + b"\xF7\xF7\xF7\xF7\xFF\xFF\xFB\xFE": SASIndex.row_size_index, + b"\xF6\xF6\xF6\xF6": SASIndex.column_size_index, + b"\x00\x00\x00\x00\xF6\xF6\xF6\xF6": SASIndex.column_size_index, + b"\xF6\xF6\xF6\xF6\x00\x00\x00\x00": SASIndex.column_size_index, + b"\xF6\xF6\xF6\xF6\xFF\xFF\xFB\xFE": SASIndex.column_size_index, + b"\x00\xFC\xFF\xFF": SASIndex.subheader_counts_index, + b"\xFF\xFF\xFC\x00": SASIndex.subheader_counts_index, + b"\x00\xFC\xFF\xFF\xFF\xFF\xFF\xFF": SASIndex.subheader_counts_index, + b"\xFF\xFF\xFF\xFF\xFF\xFF\xFC\x00": SASIndex.subheader_counts_index, + b"\xFD\xFF\xFF\xFF": SASIndex.column_text_index, + b"\xFF\xFF\xFF\xFD": SASIndex.column_text_index, + b"\xFD\xFF\xFF\xFF\xFF\xFF\xFF\xFF": SASIndex.column_text_index, + b"\xFF\xFF\xFF\xFF\xFF\xFF\xFF\xFD": SASIndex.column_text_index, + b"\xFF\xFF\xFF\xFF": SASIndex.column_name_index, + b"\xFF\xFF\xFF\xFF\xFF\xFF\xFF\xFF": SASIndex.column_name_index, + b"\xFC\xFF\xFF\xFF": SASIndex.column_attributes_index, + b"\xFF\xFF\xFF\xFC": SASIndex.column_attributes_index, + b"\xFC\xFF\xFF\xFF\xFF\xFF\xFF\xFF": SASIndex.column_attributes_index, + b"\xFF\xFF\xFF\xFF\xFF\xFF\xFF\xFC": SASIndex.column_attributes_index, + b"\xFE\xFB\xFF\xFF": SASIndex.format_and_label_index, + b"\xFF\xFF\xFB\xFE": SASIndex.format_and_label_index, + b"\xFE\xFB\xFF\xFF\xFF\xFF\xFF\xFF": SASIndex.format_and_label_index, + b"\xFF\xFF\xFF\xFF\xFF\xFF\xFB\xFE": SASIndex.format_and_label_index, + b"\xFE\xFF\xFF\xFF": SASIndex.column_list_index, + b"\xFF\xFF\xFF\xFE": SASIndex.column_list_index, + b"\xFE\xFF\xFF\xFF\xFF\xFF\xFF\xFF": SASIndex.column_list_index, + b"\xFF\xFF\xFF\xFF\xFF\xFF\xFF\xFE": SASIndex.column_list_index, +} + + +# List of frequently used SAS date and datetime formats +# http://support.sas.com/documentation/cdl/en/etsug/60372/HTML/default/viewer.htm#etsug_intervals_sect009.htm +# https://github.com/epam/parso/blob/master/src/main/java/com/epam/parso/impl/SasFileConstants.java +sas_date_formats: Final = ( + "DATE", + "DAY", + "DDMMYY", + "DOWNAME", + "JULDAY", + "JULIAN", + "MMDDYY", + "MMYY", + "MMYYC", + "MMYYD", + "MMYYP", + "MMYYS", + "MMYYN", + "MONNAME", + "MONTH", + "MONYY", + "QTR", + "QTRR", + "NENGO", + "WEEKDATE", + "WEEKDATX", + "WEEKDAY", + "WEEKV", + "WORDDATE", + "WORDDATX", + "YEAR", + "YYMM", + "YYMMC", + "YYMMD", + "YYMMP", + "YYMMS", + "YYMMN", + "YYMON", + "YYMMDD", + "YYQ", + "YYQC", + "YYQD", + "YYQP", + "YYQS", + "YYQN", + "YYQR", + "YYQRC", + "YYQRD", + "YYQRP", + "YYQRS", + "YYQRN", + "YYMMDDP", + "YYMMDDC", + "E8601DA", + "YYMMDDN", + "MMDDYYC", + "MMDDYYS", + "MMDDYYD", + "YYMMDDS", + "B8601DA", + "DDMMYYN", + "YYMMDDD", + "DDMMYYB", + "DDMMYYP", + "MMDDYYP", + "YYMMDDB", + "MMDDYYN", + "DDMMYYC", + "DDMMYYD", + "DDMMYYS", + "MINGUO", +) + +sas_datetime_formats: Final = ( + "DATETIME", + "DTWKDATX", + "B8601DN", + "B8601DT", + "B8601DX", + "B8601DZ", + "B8601LX", + "E8601DN", + "E8601DT", + "E8601DX", + "E8601DZ", + "E8601LX", + "DATEAMPM", + "DTDATE", + "DTMONYY", + "DTMONYY", + "DTWKDATX", + "DTYEAR", + "TOD", + "MDYAMPM", +) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/sas/sas_xport.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/sas/sas_xport.py new file mode 100644 index 0000000000000000000000000000000000000000..11b2ed0ee73168ba82e3b8d312f96bcea9398e49 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/sas/sas_xport.py @@ -0,0 +1,508 @@ +""" +Read a SAS XPort format file into a Pandas DataFrame. + +Based on code from Jack Cushman (github.com/jcushman/xport). + +The file format is defined here: + +https://support.sas.com/content/dam/SAS/support/en/technical-papers/record-layout-of-a-sas-version-5-or-6-data-set-in-sas-transport-xport-format.pdf +""" +from __future__ import annotations + +from collections import abc +from datetime import datetime +import struct +from typing import TYPE_CHECKING +import warnings + +import numpy as np + +from pandas.util._decorators import Appender +from pandas.util._exceptions import find_stack_level + +import pandas as pd + +from pandas.io.common import get_handle +from pandas.io.sas.sasreader import ReaderBase + +if TYPE_CHECKING: + from pandas._typing import ( + CompressionOptions, + DatetimeNaTType, + FilePath, + ReadBuffer, + ) +_correct_line1 = ( + "HEADER RECORD*******LIBRARY HEADER RECORD!!!!!!!" + "000000000000000000000000000000 " +) +_correct_header1 = ( + "HEADER RECORD*******MEMBER HEADER RECORD!!!!!!!000000000000000001600000000" +) +_correct_header2 = ( + "HEADER RECORD*******DSCRPTR HEADER RECORD!!!!!!!" + "000000000000000000000000000000 " +) +_correct_obs_header = ( + "HEADER RECORD*******OBS HEADER RECORD!!!!!!!" + "000000000000000000000000000000 " +) +_fieldkeys = [ + "ntype", + "nhfun", + "field_length", + "nvar0", + "name", + "label", + "nform", + "nfl", + "num_decimals", + "nfj", + "nfill", + "niform", + "nifl", + "nifd", + "npos", + "_", +] + + +_base_params_doc = """\ +Parameters +---------- +filepath_or_buffer : str or file-like object + Path to SAS file or object implementing binary read method.""" + +_params2_doc = """\ +index : identifier of index column + Identifier of column that should be used as index of the DataFrame. +encoding : str + Encoding for text data. +chunksize : int + Read file `chunksize` lines at a time, returns iterator.""" + +_format_params_doc = """\ +format : str + File format, only `xport` is currently supported.""" + +_iterator_doc = """\ +iterator : bool, default False + Return XportReader object for reading file incrementally.""" + + +_read_sas_doc = f"""Read a SAS file into a DataFrame. + +{_base_params_doc} +{_format_params_doc} +{_params2_doc} +{_iterator_doc} + +Returns +------- +DataFrame or XportReader + +Examples +-------- +Read a SAS Xport file: + +>>> df = pd.read_sas('filename.XPT') + +Read a Xport file in 10,000 line chunks: + +>>> itr = pd.read_sas('filename.XPT', chunksize=10000) +>>> for chunk in itr: +>>> do_something(chunk) + +""" + +_xport_reader_doc = f"""\ +Class for reading SAS Xport files. + +{_base_params_doc} +{_params2_doc} + +Attributes +---------- +member_info : list + Contains information about the file +fields : list + Contains information about the variables in the file +""" + +_read_method_doc = """\ +Read observations from SAS Xport file, returning as data frame. + +Parameters +---------- +nrows : int + Number of rows to read from data file; if None, read whole + file. + +Returns +------- +A DataFrame. +""" + + +def _parse_date(datestr: str) -> DatetimeNaTType: + """Given a date in xport format, return Python date.""" + try: + # e.g. "16FEB11:10:07:55" + return datetime.strptime(datestr, "%d%b%y:%H:%M:%S") + except ValueError: + return pd.NaT + + +def _split_line(s: str, parts): + """ + Parameters + ---------- + s: str + Fixed-length string to split + parts: list of (name, length) pairs + Used to break up string, name '_' will be filtered from output. + + Returns + ------- + Dict of name:contents of string at given location. + """ + out = {} + start = 0 + for name, length in parts: + out[name] = s[start : start + length].strip() + start += length + del out["_"] + return out + + +def _handle_truncated_float_vec(vec, nbytes): + # This feature is not well documented, but some SAS XPORT files + # have 2-7 byte "truncated" floats. To read these truncated + # floats, pad them with zeros on the right to make 8 byte floats. + # + # References: + # https://github.com/jcushman/xport/pull/3 + # The R "foreign" library + + if nbytes != 8: + vec1 = np.zeros(len(vec), np.dtype("S8")) + dtype = np.dtype(f"S{nbytes},S{8 - nbytes}") + vec2 = vec1.view(dtype=dtype) + vec2["f0"] = vec + return vec2 + + return vec + + +def _parse_float_vec(vec): + """ + Parse a vector of float values representing IBM 8 byte floats into + native 8 byte floats. + """ + dtype = np.dtype(">u4,>u4") + vec1 = vec.view(dtype=dtype) + xport1 = vec1["f0"] + xport2 = vec1["f1"] + + # Start by setting first half of ieee number to first half of IBM + # number sans exponent + ieee1 = xport1 & 0x00FFFFFF + + # The fraction bit to the left of the binary point in the ieee + # format was set and the number was shifted 0, 1, 2, or 3 + # places. This will tell us how to adjust the ibm exponent to be a + # power of 2 ieee exponent and how to shift the fraction bits to + # restore the correct magnitude. + shift = np.zeros(len(vec), dtype=np.uint8) + shift[np.where(xport1 & 0x00200000)] = 1 + shift[np.where(xport1 & 0x00400000)] = 2 + shift[np.where(xport1 & 0x00800000)] = 3 + + # shift the ieee number down the correct number of places then + # set the second half of the ieee number to be the second half + # of the ibm number shifted appropriately, ored with the bits + # from the first half that would have been shifted in if we + # could shift a double. All we are worried about are the low + # order 3 bits of the first half since we're only shifting by + # 1, 2, or 3. + ieee1 >>= shift + ieee2 = (xport2 >> shift) | ((xport1 & 0x00000007) << (29 + (3 - shift))) + + # clear the 1 bit to the left of the binary point + ieee1 &= 0xFFEFFFFF + + # set the exponent of the ieee number to be the actual exponent + # plus the shift count + 1023. Or this into the first half of the + # ieee number. The ibm exponent is excess 64 but is adjusted by 65 + # since during conversion to ibm format the exponent is + # incremented by 1 and the fraction bits left 4 positions to the + # right of the radix point. (had to add >> 24 because C treats & + # 0x7f as 0x7f000000 and Python doesn't) + ieee1 |= ((((((xport1 >> 24) & 0x7F) - 65) << 2) + shift + 1023) << 20) | ( + xport1 & 0x80000000 + ) + + ieee = np.empty((len(ieee1),), dtype=">u4,>u4") + ieee["f0"] = ieee1 + ieee["f1"] = ieee2 + ieee = ieee.view(dtype=">f8") + ieee = ieee.astype("f8") + + return ieee + + +class XportReader(ReaderBase, abc.Iterator): + __doc__ = _xport_reader_doc + + def __init__( + self, + filepath_or_buffer: FilePath | ReadBuffer[bytes], + index=None, + encoding: str | None = "ISO-8859-1", + chunksize: int | None = None, + compression: CompressionOptions = "infer", + ) -> None: + self._encoding = encoding + self._lines_read = 0 + self._index = index + self._chunksize = chunksize + + self.handles = get_handle( + filepath_or_buffer, + "rb", + encoding=encoding, + is_text=False, + compression=compression, + ) + self.filepath_or_buffer = self.handles.handle + + try: + self._read_header() + except Exception: + self.close() + raise + + def close(self) -> None: + self.handles.close() + + def _get_row(self): + return self.filepath_or_buffer.read(80).decode() + + def _read_header(self) -> None: + self.filepath_or_buffer.seek(0) + + # read file header + line1 = self._get_row() + if line1 != _correct_line1: + if "**COMPRESSED**" in line1: + # this was created with the PROC CPORT method and can't be read + # https://documentation.sas.com/doc/en/pgmsascdc/9.4_3.5/movefile/p1bm6aqp3fw4uin1hucwh718f6kp.htm + raise ValueError( + "Header record indicates a CPORT file, which is not readable." + ) + raise ValueError("Header record is not an XPORT file.") + + line2 = self._get_row() + fif = [["prefix", 24], ["version", 8], ["OS", 8], ["_", 24], ["created", 16]] + file_info = _split_line(line2, fif) + if file_info["prefix"] != "SAS SAS SASLIB": + raise ValueError("Header record has invalid prefix.") + file_info["created"] = _parse_date(file_info["created"]) + self.file_info = file_info + + line3 = self._get_row() + file_info["modified"] = _parse_date(line3[:16]) + + # read member header + header1 = self._get_row() + header2 = self._get_row() + headflag1 = header1.startswith(_correct_header1) + headflag2 = header2 == _correct_header2 + if not (headflag1 and headflag2): + raise ValueError("Member header not found") + # usually 140, could be 135 + fieldnamelength = int(header1[-5:-2]) + + # member info + mem = [ + ["prefix", 8], + ["set_name", 8], + ["sasdata", 8], + ["version", 8], + ["OS", 8], + ["_", 24], + ["created", 16], + ] + member_info = _split_line(self._get_row(), mem) + mem = [["modified", 16], ["_", 16], ["label", 40], ["type", 8]] + member_info.update(_split_line(self._get_row(), mem)) + member_info["modified"] = _parse_date(member_info["modified"]) + member_info["created"] = _parse_date(member_info["created"]) + self.member_info = member_info + + # read field names + types = {1: "numeric", 2: "char"} + fieldcount = int(self._get_row()[54:58]) + datalength = fieldnamelength * fieldcount + # round up to nearest 80 + if datalength % 80: + datalength += 80 - datalength % 80 + fielddata = self.filepath_or_buffer.read(datalength) + fields = [] + obs_length = 0 + while len(fielddata) >= fieldnamelength: + # pull data for one field + fieldbytes, fielddata = ( + fielddata[:fieldnamelength], + fielddata[fieldnamelength:], + ) + + # rest at end gets ignored, so if field is short, pad out + # to match struct pattern below + fieldbytes = fieldbytes.ljust(140) + + fieldstruct = struct.unpack(">hhhh8s40s8shhh2s8shhl52s", fieldbytes) + field = dict(zip(_fieldkeys, fieldstruct)) + del field["_"] + field["ntype"] = types[field["ntype"]] + fl = field["field_length"] + if field["ntype"] == "numeric" and ((fl < 2) or (fl > 8)): + msg = f"Floating field width {fl} is not between 2 and 8." + raise TypeError(msg) + + for k, v in field.items(): + try: + field[k] = v.strip() + except AttributeError: + pass + + obs_length += field["field_length"] + fields += [field] + + header = self._get_row() + if not header == _correct_obs_header: + raise ValueError("Observation header not found.") + + self.fields = fields + self.record_length = obs_length + self.record_start = self.filepath_or_buffer.tell() + + self.nobs = self._record_count() + self.columns = [x["name"].decode() for x in self.fields] + + # Setup the dtype. + dtypel = [ + ("s" + str(i), "S" + str(field["field_length"])) + for i, field in enumerate(self.fields) + ] + dtype = np.dtype(dtypel) + self._dtype = dtype + + def __next__(self) -> pd.DataFrame: + return self.read(nrows=self._chunksize or 1) + + def _record_count(self) -> int: + """ + Get number of records in file. + + This is maybe suboptimal because we have to seek to the end of + the file. + + Side effect: returns file position to record_start. + """ + self.filepath_or_buffer.seek(0, 2) + total_records_length = self.filepath_or_buffer.tell() - self.record_start + + if total_records_length % 80 != 0: + warnings.warn( + "xport file may be corrupted.", + stacklevel=find_stack_level(), + ) + + if self.record_length > 80: + self.filepath_or_buffer.seek(self.record_start) + return total_records_length // self.record_length + + self.filepath_or_buffer.seek(-80, 2) + last_card_bytes = self.filepath_or_buffer.read(80) + last_card = np.frombuffer(last_card_bytes, dtype=np.uint64) + + # 8 byte blank + ix = np.flatnonzero(last_card == 2314885530818453536) + + if len(ix) == 0: + tail_pad = 0 + else: + tail_pad = 8 * len(ix) + + self.filepath_or_buffer.seek(self.record_start) + + return (total_records_length - tail_pad) // self.record_length + + def get_chunk(self, size: int | None = None) -> pd.DataFrame: + """ + Reads lines from Xport file and returns as dataframe + + Parameters + ---------- + size : int, defaults to None + Number of lines to read. If None, reads whole file. + + Returns + ------- + DataFrame + """ + if size is None: + size = self._chunksize + return self.read(nrows=size) + + def _missing_double(self, vec): + v = vec.view(dtype="u1,u1,u2,u4") + miss = (v["f1"] == 0) & (v["f2"] == 0) & (v["f3"] == 0) + miss1 = ( + ((v["f0"] >= 0x41) & (v["f0"] <= 0x5A)) + | (v["f0"] == 0x5F) + | (v["f0"] == 0x2E) + ) + miss &= miss1 + return miss + + @Appender(_read_method_doc) + def read(self, nrows: int | None = None) -> pd.DataFrame: + if nrows is None: + nrows = self.nobs + + read_lines = min(nrows, self.nobs - self._lines_read) + read_len = read_lines * self.record_length + if read_len <= 0: + self.close() + raise StopIteration + raw = self.filepath_or_buffer.read(read_len) + data = np.frombuffer(raw, dtype=self._dtype, count=read_lines) + + df_data = {} + for j, x in enumerate(self.columns): + vec = data["s" + str(j)] + ntype = self.fields[j]["ntype"] + if ntype == "numeric": + vec = _handle_truncated_float_vec(vec, self.fields[j]["field_length"]) + miss = self._missing_double(vec) + v = _parse_float_vec(vec) + v[miss] = np.nan + elif self.fields[j]["ntype"] == "char": + v = [y.rstrip() for y in vec] + + if self._encoding is not None: + v = [y.decode(self._encoding) for y in v] + + df_data.update({x: v}) + df = pd.DataFrame(df_data) + + if self._index is None: + df.index = pd.Index(range(self._lines_read, self._lines_read + read_lines)) + else: + df = df.set_index(self._index) + + self._lines_read += read_lines + + return df diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/sas/sasreader.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/sas/sasreader.py new file mode 100644 index 0000000000000000000000000000000000000000..c39313d5dc6548fcc014f7a886988a2b9d9001ed --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/io/sas/sasreader.py @@ -0,0 +1,178 @@ +""" +Read SAS sas7bdat or xport files. +""" +from __future__ import annotations + +from abc import ( + ABC, + abstractmethod, +) +from typing import ( + TYPE_CHECKING, + overload, +) + +from pandas.util._decorators import doc + +from pandas.core.shared_docs import _shared_docs + +from pandas.io.common import stringify_path + +if TYPE_CHECKING: + from collections.abc import Hashable + from types import TracebackType + + from pandas._typing import ( + CompressionOptions, + FilePath, + ReadBuffer, + Self, + ) + + from pandas import DataFrame + + +class ReaderBase(ABC): + """ + Protocol for XportReader and SAS7BDATReader classes. + """ + + @abstractmethod + def read(self, nrows: int | None = None) -> DataFrame: + ... + + @abstractmethod + def close(self) -> None: + ... + + def __enter__(self) -> Self: + return self + + def __exit__( + self, + exc_type: type[BaseException] | None, + exc_value: BaseException | None, + traceback: TracebackType | None, + ) -> None: + self.close() + + +@overload +def read_sas( + filepath_or_buffer: FilePath | ReadBuffer[bytes], + *, + format: str | None = ..., + index: Hashable | None = ..., + encoding: str | None = ..., + chunksize: int = ..., + iterator: bool = ..., + compression: CompressionOptions = ..., +) -> ReaderBase: + ... + + +@overload +def read_sas( + filepath_or_buffer: FilePath | ReadBuffer[bytes], + *, + format: str | None = ..., + index: Hashable | None = ..., + encoding: str | None = ..., + chunksize: None = ..., + iterator: bool = ..., + compression: CompressionOptions = ..., +) -> DataFrame | ReaderBase: + ... + + +@doc(decompression_options=_shared_docs["decompression_options"] % "filepath_or_buffer") +def read_sas( + filepath_or_buffer: FilePath | ReadBuffer[bytes], + *, + format: str | None = None, + index: Hashable | None = None, + encoding: str | None = None, + chunksize: int | None = None, + iterator: bool = False, + compression: CompressionOptions = "infer", +) -> DataFrame | ReaderBase: + """ + Read SAS files stored as either XPORT or SAS7BDAT format files. + + Parameters + ---------- + filepath_or_buffer : str, path object, or file-like object + String, path object (implementing ``os.PathLike[str]``), or file-like + object implementing a binary ``read()`` function. The string could be a URL. + Valid URL schemes include http, ftp, s3, and file. For file URLs, a host is + expected. A local file could be: + ``file://localhost/path/to/table.sas7bdat``. + format : str {{'xport', 'sas7bdat'}} or None + If None, file format is inferred from file extension. If 'xport' or + 'sas7bdat', uses the corresponding format. + index : identifier of index column, defaults to None + Identifier of column that should be used as index of the DataFrame. + encoding : str, default is None + Encoding for text data. If None, text data are stored as raw bytes. + chunksize : int + Read file `chunksize` lines at a time, returns iterator. + iterator : bool, defaults to False + If True, returns an iterator for reading the file incrementally. + {decompression_options} + + Returns + ------- + DataFrame if iterator=False and chunksize=None, else SAS7BDATReader + or XportReader + + Examples + -------- + >>> df = pd.read_sas("sas_data.sas7bdat") # doctest: +SKIP + """ + if format is None: + buffer_error_msg = ( + "If this is a buffer object rather " + "than a string name, you must specify a format string" + ) + filepath_or_buffer = stringify_path(filepath_or_buffer) + if not isinstance(filepath_or_buffer, str): + raise ValueError(buffer_error_msg) + fname = filepath_or_buffer.lower() + if ".xpt" in fname: + format = "xport" + elif ".sas7bdat" in fname: + format = "sas7bdat" + else: + raise ValueError( + f"unable to infer format of SAS file from filename: {repr(fname)}" + ) + + reader: ReaderBase + if format.lower() == "xport": + from pandas.io.sas.sas_xport import XportReader + + reader = XportReader( + filepath_or_buffer, + index=index, + encoding=encoding, + chunksize=chunksize, + compression=compression, + ) + elif format.lower() == "sas7bdat": + from pandas.io.sas.sas7bdat import SAS7BDATReader + + reader = SAS7BDATReader( + filepath_or_buffer, + index=index, + encoding=encoding, + chunksize=chunksize, + compression=compression, + ) + else: + raise ValueError("unknown SAS format") + + if iterator or chunksize: + return reader + + with reader: + return reader.read() diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..55c861e384d679654b8615d4cb5808f536fd8f2e --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/__init__.py @@ -0,0 +1,98 @@ +""" +Plotting public API. + +Authors of third-party plotting backends should implement a module with a +public ``plot(data, kind, **kwargs)``. The parameter `data` will contain +the data structure and can be a `Series` or a `DataFrame`. For example, +for ``df.plot()`` the parameter `data` will contain the DataFrame `df`. +In some cases, the data structure is transformed before being sent to +the backend (see PlotAccessor.__call__ in pandas/plotting/_core.py for +the exact transformations). + +The parameter `kind` will be one of: + +- line +- bar +- barh +- box +- hist +- kde +- area +- pie +- scatter +- hexbin + +See the pandas API reference for documentation on each kind of plot. + +Any other keyword argument is currently assumed to be backend specific, +but some parameters may be unified and added to the signature in the +future (e.g. `title` which should be useful for any backend). + +Currently, all the Matplotlib functions in pandas are accessed through +the selected backend. For example, `pandas.plotting.boxplot` (equivalent +to `DataFrame.boxplot`) is also accessed in the selected backend. This +is expected to change, and the exact API is under discussion. But with +the current version, backends are expected to implement the next functions: + +- plot (describe above, used for `Series.plot` and `DataFrame.plot`) +- hist_series and hist_frame (for `Series.hist` and `DataFrame.hist`) +- boxplot (`pandas.plotting.boxplot(df)` equivalent to `DataFrame.boxplot`) +- boxplot_frame and boxplot_frame_groupby +- register and deregister (register converters for the tick formats) +- Plots not called as `Series` and `DataFrame` methods: + - table + - andrews_curves + - autocorrelation_plot + - bootstrap_plot + - lag_plot + - parallel_coordinates + - radviz + - scatter_matrix + +Use the code in pandas/plotting/_matplotib.py and +https://github.com/pyviz/hvplot as a reference on how to write a backend. + +For the discussion about the API see +https://github.com/pandas-dev/pandas/issues/26747. +""" +from pandas.plotting._core import ( + PlotAccessor, + boxplot, + boxplot_frame, + boxplot_frame_groupby, + hist_frame, + hist_series, +) +from pandas.plotting._misc import ( + andrews_curves, + autocorrelation_plot, + bootstrap_plot, + deregister as deregister_matplotlib_converters, + lag_plot, + parallel_coordinates, + plot_params, + radviz, + register as register_matplotlib_converters, + scatter_matrix, + table, +) + +__all__ = [ + "PlotAccessor", + "boxplot", + "boxplot_frame", + "boxplot_frame_groupby", + "hist_frame", + "hist_series", + "scatter_matrix", + "radviz", + "andrews_curves", + "bootstrap_plot", + "parallel_coordinates", + "lag_plot", + "autocorrelation_plot", + "table", + "plot_params", + "register_matplotlib_converters", + "deregister_matplotlib_converters", +] diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_core.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_core.py new file mode 100644 index 0000000000000000000000000000000000000000..cb5598a98d5afbc93954d74e3ecc78b4e572606d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_core.py @@ -0,0 +1,1946 @@ +from __future__ import annotations + +import importlib +from typing import ( + TYPE_CHECKING, + Callable, + Literal, +) + +from pandas._config import get_option + +from pandas.util._decorators import ( + Appender, + Substitution, +) + +from pandas.core.dtypes.common import ( + is_integer, + is_list_like, +) +from pandas.core.dtypes.generic import ( + ABCDataFrame, + ABCSeries, +) + +from pandas.core.base import PandasObject + +if TYPE_CHECKING: + from collections.abc import ( + Hashable, + Sequence, + ) + import types + + from matplotlib.axes import Axes + import numpy as np + + from pandas._typing import IndexLabel + + from pandas import ( + DataFrame, + Series, + ) + from pandas.core.groupby.generic import DataFrameGroupBy + + +def hist_series( + self: Series, + by=None, + ax=None, + grid: bool = True, + xlabelsize: int | None = None, + xrot: float | None = None, + ylabelsize: int | None = None, + yrot: float | None = None, + figsize: tuple[int, int] | None = None, + bins: int | Sequence[int] = 10, + backend: str | None = None, + legend: bool = False, + **kwargs, +): + """ + Draw histogram of the input series using matplotlib. + + Parameters + ---------- + by : object, optional + If passed, then used to form histograms for separate groups. + ax : matplotlib axis object + If not passed, uses gca(). + grid : bool, default True + Whether to show axis grid lines. + xlabelsize : int, default None + If specified changes the x-axis label size. + xrot : float, default None + Rotation of x axis labels. + ylabelsize : int, default None + If specified changes the y-axis label size. + yrot : float, default None + Rotation of y axis labels. + figsize : tuple, default None + Figure size in inches by default. + bins : int or sequence, default 10 + Number of histogram bins to be used. If an integer is given, bins + 1 + bin edges are calculated and returned. If bins is a sequence, gives + bin edges, including left edge of first bin and right edge of last + bin. In this case, bins is returned unmodified. + backend : str, default None + Backend to use instead of the backend specified in the option + ``plotting.backend``. For instance, 'matplotlib'. Alternatively, to + specify the ``plotting.backend`` for the whole session, set + ``pd.options.plotting.backend``. + legend : bool, default False + Whether to show the legend. + + **kwargs + To be passed to the actual plotting function. + + Returns + ------- + matplotlib.AxesSubplot + A histogram plot. + + See Also + -------- + matplotlib.axes.Axes.hist : Plot a histogram using matplotlib. + + Examples + -------- + For Series: + + .. plot:: + :context: close-figs + + >>> lst = ['a', 'a', 'a', 'b', 'b', 'b'] + >>> ser = pd.Series([1, 2, 2, 4, 6, 6], index=lst) + >>> hist = ser.hist() + + For Groupby: + + .. plot:: + :context: close-figs + + >>> lst = ['a', 'a', 'a', 'b', 'b', 'b'] + >>> ser = pd.Series([1, 2, 2, 4, 6, 6], index=lst) + >>> hist = ser.groupby(level=0).hist() + """ + plot_backend = _get_plot_backend(backend) + return plot_backend.hist_series( + self, + by=by, + ax=ax, + grid=grid, + xlabelsize=xlabelsize, + xrot=xrot, + ylabelsize=ylabelsize, + yrot=yrot, + figsize=figsize, + bins=bins, + legend=legend, + **kwargs, + ) + + +def hist_frame( + data: DataFrame, + column: IndexLabel | None = None, + by=None, + grid: bool = True, + xlabelsize: int | None = None, + xrot: float | None = None, + ylabelsize: int | None = None, + yrot: float | None = None, + ax=None, + sharex: bool = False, + sharey: bool = False, + figsize: tuple[int, int] | None = None, + layout: tuple[int, int] | None = None, + bins: int | Sequence[int] = 10, + backend: str | None = None, + legend: bool = False, + **kwargs, +): + """ + Make a histogram of the DataFrame's columns. + + A `histogram`_ is a representation of the distribution of data. + This function calls :meth:`matplotlib.pyplot.hist`, on each series in + the DataFrame, resulting in one histogram per column. + + .. _histogram: https://en.wikipedia.org/wiki/Histogram + + Parameters + ---------- + data : DataFrame + The pandas object holding the data. + column : str or sequence, optional + If passed, will be used to limit data to a subset of columns. + by : object, optional + If passed, then used to form histograms for separate groups. + grid : bool, default True + Whether to show axis grid lines. + xlabelsize : int, default None + If specified changes the x-axis label size. + xrot : float, default None + Rotation of x axis labels. For example, a value of 90 displays the + x labels rotated 90 degrees clockwise. + ylabelsize : int, default None + If specified changes the y-axis label size. + yrot : float, default None + Rotation of y axis labels. For example, a value of 90 displays the + y labels rotated 90 degrees clockwise. + ax : Matplotlib axes object, default None + The axes to plot the histogram on. + sharex : bool, default True if ax is None else False + In case subplots=True, share x axis and set some x axis labels to + invisible; defaults to True if ax is None otherwise False if an ax + is passed in. + Note that passing in both an ax and sharex=True will alter all x axis + labels for all subplots in a figure. + sharey : bool, default False + In case subplots=True, share y axis and set some y axis labels to + invisible. + figsize : tuple, optional + The size in inches of the figure to create. Uses the value in + `matplotlib.rcParams` by default. + layout : tuple, optional + Tuple of (rows, columns) for the layout of the histograms. + bins : int or sequence, default 10 + Number of histogram bins to be used. If an integer is given, bins + 1 + bin edges are calculated and returned. If bins is a sequence, gives + bin edges, including left edge of first bin and right edge of last + bin. In this case, bins is returned unmodified. + + backend : str, default None + Backend to use instead of the backend specified in the option + ``plotting.backend``. For instance, 'matplotlib'. Alternatively, to + specify the ``plotting.backend`` for the whole session, set + ``pd.options.plotting.backend``. + + legend : bool, default False + Whether to show the legend. + + **kwargs + All other plotting keyword arguments to be passed to + :meth:`matplotlib.pyplot.hist`. + + Returns + ------- + matplotlib.AxesSubplot or numpy.ndarray of them + + See Also + -------- + matplotlib.pyplot.hist : Plot a histogram using matplotlib. + + Examples + -------- + This example draws a histogram based on the length and width of + some animals, displayed in three bins + + .. plot:: + :context: close-figs + + >>> data = {'length': [1.5, 0.5, 1.2, 0.9, 3], + ... 'width': [0.7, 0.2, 0.15, 0.2, 1.1]} + >>> index = ['pig', 'rabbit', 'duck', 'chicken', 'horse'] + >>> df = pd.DataFrame(data, index=index) + >>> hist = df.hist(bins=3) + """ + plot_backend = _get_plot_backend(backend) + return plot_backend.hist_frame( + data, + column=column, + by=by, + grid=grid, + xlabelsize=xlabelsize, + xrot=xrot, + ylabelsize=ylabelsize, + yrot=yrot, + ax=ax, + sharex=sharex, + sharey=sharey, + figsize=figsize, + layout=layout, + legend=legend, + bins=bins, + **kwargs, + ) + + +_boxplot_doc = """ +Make a box plot from DataFrame columns. + +Make a box-and-whisker plot from DataFrame columns, optionally grouped +by some other columns. A box plot is a method for graphically depicting +groups of numerical data through their quartiles. +The box extends from the Q1 to Q3 quartile values of the data, +with a line at the median (Q2). The whiskers extend from the edges +of box to show the range of the data. By default, they extend no more than +`1.5 * IQR (IQR = Q3 - Q1)` from the edges of the box, ending at the farthest +data point within that interval. Outliers are plotted as separate dots. + +For further details see +Wikipedia's entry for `boxplot `_. + +Parameters +---------- +%(data)s\ +column : str or list of str, optional + Column name or list of names, or vector. + Can be any valid input to :meth:`pandas.DataFrame.groupby`. +by : str or array-like, optional + Column in the DataFrame to :meth:`pandas.DataFrame.groupby`. + One box-plot will be done per value of columns in `by`. +ax : object of class matplotlib.axes.Axes, optional + The matplotlib axes to be used by boxplot. +fontsize : float or str + Tick label font size in points or as a string (e.g., `large`). +rot : float, default 0 + The rotation angle of labels (in degrees) + with respect to the screen coordinate system. +grid : bool, default True + Setting this to True will show the grid. +figsize : A tuple (width, height) in inches + The size of the figure to create in matplotlib. +layout : tuple (rows, columns), optional + For example, (3, 5) will display the subplots + using 3 rows and 5 columns, starting from the top-left. +return_type : {'axes', 'dict', 'both'} or None, default 'axes' + The kind of object to return. The default is ``axes``. + + * 'axes' returns the matplotlib axes the boxplot is drawn on. + * 'dict' returns a dictionary whose values are the matplotlib + Lines of the boxplot. + * 'both' returns a namedtuple with the axes and dict. + * when grouping with ``by``, a Series mapping columns to + ``return_type`` is returned. + + If ``return_type`` is `None`, a NumPy array + of axes with the same shape as ``layout`` is returned. +%(backend)s\ + +**kwargs + All other plotting keyword arguments to be passed to + :func:`matplotlib.pyplot.boxplot`. + +Returns +------- +result + See Notes. + +See Also +-------- +pandas.Series.plot.hist: Make a histogram. +matplotlib.pyplot.boxplot : Matplotlib equivalent plot. + +Notes +----- +The return type depends on the `return_type` parameter: + +* 'axes' : object of class matplotlib.axes.Axes +* 'dict' : dict of matplotlib.lines.Line2D objects +* 'both' : a namedtuple with structure (ax, lines) + +For data grouped with ``by``, return a Series of the above or a numpy +array: + +* :class:`~pandas.Series` +* :class:`~numpy.array` (for ``return_type = None``) + +Use ``return_type='dict'`` when you want to tweak the appearance +of the lines after plotting. In this case a dict containing the Lines +making up the boxes, caps, fliers, medians, and whiskers is returned. + +Examples +-------- + +Boxplots can be created for every column in the dataframe +by ``df.boxplot()`` or indicating the columns to be used: + +.. plot:: + :context: close-figs + + >>> np.random.seed(1234) + >>> df = pd.DataFrame(np.random.randn(10, 4), + ... columns=['Col1', 'Col2', 'Col3', 'Col4']) + >>> boxplot = df.boxplot(column=['Col1', 'Col2', 'Col3']) # doctest: +SKIP + +Boxplots of variables distributions grouped by the values of a third +variable can be created using the option ``by``. For instance: + +.. plot:: + :context: close-figs + + >>> df = pd.DataFrame(np.random.randn(10, 2), + ... columns=['Col1', 'Col2']) + >>> df['X'] = pd.Series(['A', 'A', 'A', 'A', 'A', + ... 'B', 'B', 'B', 'B', 'B']) + >>> boxplot = df.boxplot(by='X') + +A list of strings (i.e. ``['X', 'Y']``) can be passed to boxplot +in order to group the data by combination of the variables in the x-axis: + +.. plot:: + :context: close-figs + + >>> df = pd.DataFrame(np.random.randn(10, 3), + ... columns=['Col1', 'Col2', 'Col3']) + >>> df['X'] = pd.Series(['A', 'A', 'A', 'A', 'A', + ... 'B', 'B', 'B', 'B', 'B']) + >>> df['Y'] = pd.Series(['A', 'B', 'A', 'B', 'A', + ... 'B', 'A', 'B', 'A', 'B']) + >>> boxplot = df.boxplot(column=['Col1', 'Col2'], by=['X', 'Y']) + +The layout of boxplot can be adjusted giving a tuple to ``layout``: + +.. plot:: + :context: close-figs + + >>> boxplot = df.boxplot(column=['Col1', 'Col2'], by='X', + ... layout=(2, 1)) + +Additional formatting can be done to the boxplot, like suppressing the grid +(``grid=False``), rotating the labels in the x-axis (i.e. ``rot=45``) +or changing the fontsize (i.e. ``fontsize=15``): + +.. plot:: + :context: close-figs + + >>> boxplot = df.boxplot(grid=False, rot=45, fontsize=15) # doctest: +SKIP + +The parameter ``return_type`` can be used to select the type of element +returned by `boxplot`. When ``return_type='axes'`` is selected, +the matplotlib axes on which the boxplot is drawn are returned: + + >>> boxplot = df.boxplot(column=['Col1', 'Col2'], return_type='axes') + >>> type(boxplot) + + +When grouping with ``by``, a Series mapping columns to ``return_type`` +is returned: + + >>> boxplot = df.boxplot(column=['Col1', 'Col2'], by='X', + ... return_type='axes') + >>> type(boxplot) + + +If ``return_type`` is `None`, a NumPy array of axes with the same shape +as ``layout`` is returned: + + >>> boxplot = df.boxplot(column=['Col1', 'Col2'], by='X', + ... return_type=None) + >>> type(boxplot) + +""" + +_backend_doc = """\ +backend : str, default None + Backend to use instead of the backend specified in the option + ``plotting.backend``. For instance, 'matplotlib'. Alternatively, to + specify the ``plotting.backend`` for the whole session, set + ``pd.options.plotting.backend``. +""" + + +_bar_or_line_doc = """ + Parameters + ---------- + x : label or position, optional + Allows plotting of one column versus another. If not specified, + the index of the DataFrame is used. + y : label or position, optional + Allows plotting of one column versus another. If not specified, + all numerical columns are used. + color : str, array-like, or dict, optional + The color for each of the DataFrame's columns. Possible values are: + + - A single color string referred to by name, RGB or RGBA code, + for instance 'red' or '#a98d19'. + + - A sequence of color strings referred to by name, RGB or RGBA + code, which will be used for each column recursively. For + instance ['green','yellow'] each column's %(kind)s will be filled in + green or yellow, alternatively. If there is only a single column to + be plotted, then only the first color from the color list will be + used. + + - A dict of the form {column name : color}, so that each column will be + colored accordingly. For example, if your columns are called `a` and + `b`, then passing {'a': 'green', 'b': 'red'} will color %(kind)ss for + column `a` in green and %(kind)ss for column `b` in red. + + **kwargs + Additional keyword arguments are documented in + :meth:`DataFrame.plot`. + + Returns + ------- + matplotlib.axes.Axes or np.ndarray of them + An ndarray is returned with one :class:`matplotlib.axes.Axes` + per column when ``subplots=True``. +""" + + +@Substitution(data="data : DataFrame\n The data to visualize.\n", backend="") +@Appender(_boxplot_doc) +def boxplot( + data: DataFrame, + column: str | list[str] | None = None, + by: str | list[str] | None = None, + ax: Axes | None = None, + fontsize: float | str | None = None, + rot: int = 0, + grid: bool = True, + figsize: tuple[float, float] | None = None, + layout: tuple[int, int] | None = None, + return_type: str | None = None, + **kwargs, +): + plot_backend = _get_plot_backend("matplotlib") + return plot_backend.boxplot( + data, + column=column, + by=by, + ax=ax, + fontsize=fontsize, + rot=rot, + grid=grid, + figsize=figsize, + layout=layout, + return_type=return_type, + **kwargs, + ) + + +@Substitution(data="", backend=_backend_doc) +@Appender(_boxplot_doc) +def boxplot_frame( + self: DataFrame, + column=None, + by=None, + ax=None, + fontsize: int | None = None, + rot: int = 0, + grid: bool = True, + figsize: tuple[float, float] | None = None, + layout=None, + return_type=None, + backend=None, + **kwargs, +): + plot_backend = _get_plot_backend(backend) + return plot_backend.boxplot_frame( + self, + column=column, + by=by, + ax=ax, + fontsize=fontsize, + rot=rot, + grid=grid, + figsize=figsize, + layout=layout, + return_type=return_type, + **kwargs, + ) + + +def boxplot_frame_groupby( + grouped: DataFrameGroupBy, + subplots: bool = True, + column=None, + fontsize: int | None = None, + rot: int = 0, + grid: bool = True, + ax=None, + figsize: tuple[float, float] | None = None, + layout=None, + sharex: bool = False, + sharey: bool = True, + backend=None, + **kwargs, +): + """ + Make box plots from DataFrameGroupBy data. + + Parameters + ---------- + grouped : Grouped DataFrame + subplots : bool + * ``False`` - no subplots will be used + * ``True`` - create a subplot for each group. + + column : column name or list of names, or vector + Can be any valid input to groupby. + fontsize : float or str + rot : label rotation angle + grid : Setting this to True will show the grid + ax : Matplotlib axis object, default None + figsize : A tuple (width, height) in inches + layout : tuple (optional) + The layout of the plot: (rows, columns). + sharex : bool, default False + Whether x-axes will be shared among subplots. + sharey : bool, default True + Whether y-axes will be shared among subplots. + backend : str, default None + Backend to use instead of the backend specified in the option + ``plotting.backend``. For instance, 'matplotlib'. Alternatively, to + specify the ``plotting.backend`` for the whole session, set + ``pd.options.plotting.backend``. + **kwargs + All other plotting keyword arguments to be passed to + matplotlib's boxplot function. + + Returns + ------- + dict of key/value = group key/DataFrame.boxplot return value + or DataFrame.boxplot return value in case subplots=figures=False + + Examples + -------- + You can create boxplots for grouped data and show them as separate subplots: + + .. plot:: + :context: close-figs + + >>> import itertools + >>> tuples = [t for t in itertools.product(range(1000), range(4))] + >>> index = pd.MultiIndex.from_tuples(tuples, names=['lvl0', 'lvl1']) + >>> data = np.random.randn(len(index), 4) + >>> df = pd.DataFrame(data, columns=list('ABCD'), index=index) + >>> grouped = df.groupby(level='lvl1') + >>> grouped.boxplot(rot=45, fontsize=12, figsize=(8, 10)) # doctest: +SKIP + + The ``subplots=False`` option shows the boxplots in a single figure. + + .. plot:: + :context: close-figs + + >>> grouped.boxplot(subplots=False, rot=45, fontsize=12) # doctest: +SKIP + """ + plot_backend = _get_plot_backend(backend) + return plot_backend.boxplot_frame_groupby( + grouped, + subplots=subplots, + column=column, + fontsize=fontsize, + rot=rot, + grid=grid, + ax=ax, + figsize=figsize, + layout=layout, + sharex=sharex, + sharey=sharey, + **kwargs, + ) + + +class PlotAccessor(PandasObject): + """ + Make plots of Series or DataFrame. + + Uses the backend specified by the + option ``plotting.backend``. By default, matplotlib is used. + + Parameters + ---------- + data : Series or DataFrame + The object for which the method is called. + x : label or position, default None + Only used if data is a DataFrame. + y : label, position or list of label, positions, default None + Allows plotting of one column versus another. Only used if data is a + DataFrame. + kind : str + The kind of plot to produce: + + - 'line' : line plot (default) + - 'bar' : vertical bar plot + - 'barh' : horizontal bar plot + - 'hist' : histogram + - 'box' : boxplot + - 'kde' : Kernel Density Estimation plot + - 'density' : same as 'kde' + - 'area' : area plot + - 'pie' : pie plot + - 'scatter' : scatter plot (DataFrame only) + - 'hexbin' : hexbin plot (DataFrame only) + ax : matplotlib axes object, default None + An axes of the current figure. + subplots : bool or sequence of iterables, default False + Whether to group columns into subplots: + + - ``False`` : No subplots will be used + - ``True`` : Make separate subplots for each column. + - sequence of iterables of column labels: Create a subplot for each + group of columns. For example `[('a', 'c'), ('b', 'd')]` will + create 2 subplots: one with columns 'a' and 'c', and one + with columns 'b' and 'd'. Remaining columns that aren't specified + will be plotted in additional subplots (one per column). + + .. versionadded:: 1.5.0 + + sharex : bool, default True if ax is None else False + In case ``subplots=True``, share x axis and set some x axis labels + to invisible; defaults to True if ax is None otherwise False if + an ax is passed in; Be aware, that passing in both an ax and + ``sharex=True`` will alter all x axis labels for all axis in a figure. + sharey : bool, default False + In case ``subplots=True``, share y axis and set some y axis labels to invisible. + layout : tuple, optional + (rows, columns) for the layout of subplots. + figsize : a tuple (width, height) in inches + Size of a figure object. + use_index : bool, default True + Use index as ticks for x axis. + title : str or list + Title to use for the plot. If a string is passed, print the string + at the top of the figure. If a list is passed and `subplots` is + True, print each item in the list above the corresponding subplot. + grid : bool, default None (matlab style default) + Axis grid lines. + legend : bool or {'reverse'} + Place legend on axis subplots. + style : list or dict + The matplotlib line style per column. + logx : bool or 'sym', default False + Use log scaling or symlog scaling on x axis. + + logy : bool or 'sym' default False + Use log scaling or symlog scaling on y axis. + + loglog : bool or 'sym', default False + Use log scaling or symlog scaling on both x and y axes. + + xticks : sequence + Values to use for the xticks. + yticks : sequence + Values to use for the yticks. + xlim : 2-tuple/list + Set the x limits of the current axes. + ylim : 2-tuple/list + Set the y limits of the current axes. + xlabel : label, optional + Name to use for the xlabel on x-axis. Default uses index name as xlabel, or the + x-column name for planar plots. + + .. versionchanged:: 2.0.0 + + Now applicable to histograms. + + ylabel : label, optional + Name to use for the ylabel on y-axis. Default will show no ylabel, or the + y-column name for planar plots. + + .. versionchanged:: 2.0.0 + + Now applicable to histograms. + + rot : float, default None + Rotation for ticks (xticks for vertical, yticks for horizontal + plots). + fontsize : float, default None + Font size for xticks and yticks. + colormap : str or matplotlib colormap object, default None + Colormap to select colors from. If string, load colormap with that + name from matplotlib. + colorbar : bool, optional + If True, plot colorbar (only relevant for 'scatter' and 'hexbin' + plots). + position : float + Specify relative alignments for bar plot layout. + From 0 (left/bottom-end) to 1 (right/top-end). Default is 0.5 + (center). + table : bool, Series or DataFrame, default False + If True, draw a table using the data in the DataFrame and the data + will be transposed to meet matplotlib's default layout. + If a Series or DataFrame is passed, use passed data to draw a + table. + yerr : DataFrame, Series, array-like, dict and str + See :ref:`Plotting with Error Bars ` for + detail. + xerr : DataFrame, Series, array-like, dict and str + Equivalent to yerr. + stacked : bool, default False in line and bar plots, and True in area plot + If True, create stacked plot. + secondary_y : bool or sequence, default False + Whether to plot on the secondary y-axis if a list/tuple, which + columns to plot on secondary y-axis. + mark_right : bool, default True + When using a secondary_y axis, automatically mark the column + labels with "(right)" in the legend. + include_bool : bool, default is False + If True, boolean values can be plotted. + backend : str, default None + Backend to use instead of the backend specified in the option + ``plotting.backend``. For instance, 'matplotlib'. Alternatively, to + specify the ``plotting.backend`` for the whole session, set + ``pd.options.plotting.backend``. + **kwargs + Options to pass to matplotlib plotting method. + + Returns + ------- + :class:`matplotlib.axes.Axes` or numpy.ndarray of them + If the backend is not the default matplotlib one, the return value + will be the object returned by the backend. + + Notes + ----- + - See matplotlib documentation online for more on this subject + - If `kind` = 'bar' or 'barh', you can specify relative alignments + for bar plot layout by `position` keyword. + From 0 (left/bottom-end) to 1 (right/top-end). Default is 0.5 + (center) + + Examples + -------- + For Series: + + .. plot:: + :context: close-figs + + >>> ser = pd.Series([1, 2, 3, 3]) + >>> plot = ser.plot(kind='hist', title="My plot") + + For DataFrame: + + .. plot:: + :context: close-figs + + >>> df = pd.DataFrame({'length': [1.5, 0.5, 1.2, 0.9, 3], + ... 'width': [0.7, 0.2, 0.15, 0.2, 1.1]}, + ... index=['pig', 'rabbit', 'duck', 'chicken', 'horse']) + >>> plot = df.plot(title="DataFrame Plot") + + For SeriesGroupBy: + + .. plot:: + :context: close-figs + + >>> lst = [-1, -2, -3, 1, 2, 3] + >>> ser = pd.Series([1, 2, 2, 4, 6, 6], index=lst) + >>> plot = ser.groupby(lambda x: x > 0).plot(title="SeriesGroupBy Plot") + + For DataFrameGroupBy: + + .. plot:: + :context: close-figs + + >>> df = pd.DataFrame({"col1" : [1, 2, 3, 4], + ... "col2" : ["A", "B", "A", "B"]}) + >>> plot = df.groupby("col2").plot(kind="bar", title="DataFrameGroupBy Plot") + """ + + _common_kinds = ("line", "bar", "barh", "kde", "density", "area", "hist", "box") + _series_kinds = ("pie",) + _dataframe_kinds = ("scatter", "hexbin") + _kind_aliases = {"density": "kde"} + _all_kinds = _common_kinds + _series_kinds + _dataframe_kinds + + def __init__(self, data: Series | DataFrame) -> None: + self._parent = data + + @staticmethod + def _get_call_args(backend_name: str, data: Series | DataFrame, args, kwargs): + """ + This function makes calls to this accessor `__call__` method compatible + with the previous `SeriesPlotMethods.__call__` and + `DataFramePlotMethods.__call__`. Those had slightly different + signatures, since `DataFramePlotMethods` accepted `x` and `y` + parameters. + """ + if isinstance(data, ABCSeries): + arg_def = [ + ("kind", "line"), + ("ax", None), + ("figsize", None), + ("use_index", True), + ("title", None), + ("grid", None), + ("legend", False), + ("style", None), + ("logx", False), + ("logy", False), + ("loglog", False), + ("xticks", None), + ("yticks", None), + ("xlim", None), + ("ylim", None), + ("rot", None), + ("fontsize", None), + ("colormap", None), + ("table", False), + ("yerr", None), + ("xerr", None), + ("label", None), + ("secondary_y", False), + ("xlabel", None), + ("ylabel", None), + ] + elif isinstance(data, ABCDataFrame): + arg_def = [ + ("x", None), + ("y", None), + ("kind", "line"), + ("ax", None), + ("subplots", False), + ("sharex", None), + ("sharey", False), + ("layout", None), + ("figsize", None), + ("use_index", True), + ("title", None), + ("grid", None), + ("legend", True), + ("style", None), + ("logx", False), + ("logy", False), + ("loglog", False), + ("xticks", None), + ("yticks", None), + ("xlim", None), + ("ylim", None), + ("rot", None), + ("fontsize", None), + ("colormap", None), + ("table", False), + ("yerr", None), + ("xerr", None), + ("secondary_y", False), + ("xlabel", None), + ("ylabel", None), + ] + else: + raise TypeError( + f"Called plot accessor for type {type(data).__name__}, " + "expected Series or DataFrame" + ) + + if args and isinstance(data, ABCSeries): + positional_args = str(args)[1:-1] + keyword_args = ", ".join( + [f"{name}={repr(value)}" for (name, _), value in zip(arg_def, args)] + ) + msg = ( + "`Series.plot()` should not be called with positional " + "arguments, only keyword arguments. The order of " + "positional arguments will change in the future. " + f"Use `Series.plot({keyword_args})` instead of " + f"`Series.plot({positional_args})`." + ) + raise TypeError(msg) + + pos_args = {name: value for (name, _), value in zip(arg_def, args)} + if backend_name == "pandas.plotting._matplotlib": + kwargs = dict(arg_def, **pos_args, **kwargs) + else: + kwargs = dict(pos_args, **kwargs) + + x = kwargs.pop("x", None) + y = kwargs.pop("y", None) + kind = kwargs.pop("kind", "line") + return x, y, kind, kwargs + + def __call__(self, *args, **kwargs): + plot_backend = _get_plot_backend(kwargs.pop("backend", None)) + + x, y, kind, kwargs = self._get_call_args( + plot_backend.__name__, self._parent, args, kwargs + ) + + kind = self._kind_aliases.get(kind, kind) + + # when using another backend, get out of the way + if plot_backend.__name__ != "pandas.plotting._matplotlib": + return plot_backend.plot(self._parent, x=x, y=y, kind=kind, **kwargs) + + if kind not in self._all_kinds: + raise ValueError( + f"{kind} is not a valid plot kind " + f"Valid plot kinds: {self._all_kinds}" + ) + + # The original data structured can be transformed before passed to the + # backend. For example, for DataFrame is common to set the index as the + # `x` parameter, and return a Series with the parameter `y` as values. + data = self._parent.copy() + + if isinstance(data, ABCSeries): + kwargs["reuse_plot"] = True + + if kind in self._dataframe_kinds: + if isinstance(data, ABCDataFrame): + return plot_backend.plot(data, x=x, y=y, kind=kind, **kwargs) + else: + raise ValueError(f"plot kind {kind} can only be used for data frames") + elif kind in self._series_kinds: + if isinstance(data, ABCDataFrame): + if y is None and kwargs.get("subplots") is False: + raise ValueError( + f"{kind} requires either y column or 'subplots=True'" + ) + if y is not None: + if is_integer(y) and not data.columns._holds_integer(): + y = data.columns[y] + # converted to series actually. copy to not modify + data = data[y].copy() + data.index.name = y + elif isinstance(data, ABCDataFrame): + data_cols = data.columns + if x is not None: + if is_integer(x) and not data.columns._holds_integer(): + x = data_cols[x] + elif not isinstance(data[x], ABCSeries): + raise ValueError("x must be a label or position") + data = data.set_index(x) + if y is not None: + # check if we have y as int or list of ints + int_ylist = is_list_like(y) and all(is_integer(c) for c in y) + int_y_arg = is_integer(y) or int_ylist + if int_y_arg and not data.columns._holds_integer(): + y = data_cols[y] + + label_kw = kwargs["label"] if "label" in kwargs else False + for kw in ["xerr", "yerr"]: + if kw in kwargs and ( + isinstance(kwargs[kw], str) or is_integer(kwargs[kw]) + ): + try: + kwargs[kw] = data[kwargs[kw]] + except (IndexError, KeyError, TypeError): + pass + + # don't overwrite + data = data[y].copy() + + if isinstance(data, ABCSeries): + label_name = label_kw or y + data.name = label_name + else: + match = is_list_like(label_kw) and len(label_kw) == len(y) + if label_kw and not match: + raise ValueError( + "label should be list-like and same length as y" + ) + label_name = label_kw or data.columns + data.columns = label_name + + return plot_backend.plot(data, kind=kind, **kwargs) + + __call__.__doc__ = __doc__ + + @Appender( + """ + See Also + -------- + matplotlib.pyplot.plot : Plot y versus x as lines and/or markers. + + Examples + -------- + + .. plot:: + :context: close-figs + + >>> s = pd.Series([1, 3, 2]) + >>> s.plot.line() # doctest: +SKIP + + .. plot:: + :context: close-figs + + The following example shows the populations for some animals + over the years. + + >>> df = pd.DataFrame({ + ... 'pig': [20, 18, 489, 675, 1776], + ... 'horse': [4, 25, 281, 600, 1900] + ... }, index=[1990, 1997, 2003, 2009, 2014]) + >>> lines = df.plot.line() + + .. plot:: + :context: close-figs + + An example with subplots, so an array of axes is returned. + + >>> axes = df.plot.line(subplots=True) + >>> type(axes) + + + .. plot:: + :context: close-figs + + Let's repeat the same example, but specifying colors for + each column (in this case, for each animal). + + >>> axes = df.plot.line( + ... subplots=True, color={"pig": "pink", "horse": "#742802"} + ... ) + + .. plot:: + :context: close-figs + + The following example shows the relationship between both + populations. + + >>> lines = df.plot.line(x='pig', y='horse') + """ + ) + @Substitution(kind="line") + @Appender(_bar_or_line_doc) + def line( + self, x: Hashable | None = None, y: Hashable | None = None, **kwargs + ) -> PlotAccessor: + """ + Plot Series or DataFrame as lines. + + This function is useful to plot lines using DataFrame's values + as coordinates. + """ + return self(kind="line", x=x, y=y, **kwargs) + + @Appender( + """ + See Also + -------- + DataFrame.plot.barh : Horizontal bar plot. + DataFrame.plot : Make plots of a DataFrame. + matplotlib.pyplot.bar : Make a bar plot with matplotlib. + + Examples + -------- + Basic plot. + + .. plot:: + :context: close-figs + + >>> df = pd.DataFrame({'lab':['A', 'B', 'C'], 'val':[10, 30, 20]}) + >>> ax = df.plot.bar(x='lab', y='val', rot=0) + + Plot a whole dataframe to a bar plot. Each column is assigned a + distinct color, and each row is nested in a group along the + horizontal axis. + + .. plot:: + :context: close-figs + + >>> speed = [0.1, 17.5, 40, 48, 52, 69, 88] + >>> lifespan = [2, 8, 70, 1.5, 25, 12, 28] + >>> index = ['snail', 'pig', 'elephant', + ... 'rabbit', 'giraffe', 'coyote', 'horse'] + >>> df = pd.DataFrame({'speed': speed, + ... 'lifespan': lifespan}, index=index) + >>> ax = df.plot.bar(rot=0) + + Plot stacked bar charts for the DataFrame + + .. plot:: + :context: close-figs + + >>> ax = df.plot.bar(stacked=True) + + Instead of nesting, the figure can be split by column with + ``subplots=True``. In this case, a :class:`numpy.ndarray` of + :class:`matplotlib.axes.Axes` are returned. + + .. plot:: + :context: close-figs + + >>> axes = df.plot.bar(rot=0, subplots=True) + >>> axes[1].legend(loc=2) # doctest: +SKIP + + If you don't like the default colours, you can specify how you'd + like each column to be colored. + + .. plot:: + :context: close-figs + + >>> axes = df.plot.bar( + ... rot=0, subplots=True, color={"speed": "red", "lifespan": "green"} + ... ) + >>> axes[1].legend(loc=2) # doctest: +SKIP + + Plot a single column. + + .. plot:: + :context: close-figs + + >>> ax = df.plot.bar(y='speed', rot=0) + + Plot only selected categories for the DataFrame. + + .. plot:: + :context: close-figs + + >>> ax = df.plot.bar(x='lifespan', rot=0) + """ + ) + @Substitution(kind="bar") + @Appender(_bar_or_line_doc) + def bar( # pylint: disable=disallowed-name + self, x: Hashable | None = None, y: Hashable | None = None, **kwargs + ) -> PlotAccessor: + """ + Vertical bar plot. + + A bar plot is a plot that presents categorical data with + rectangular bars with lengths proportional to the values that they + represent. A bar plot shows comparisons among discrete categories. One + axis of the plot shows the specific categories being compared, and the + other axis represents a measured value. + """ + return self(kind="bar", x=x, y=y, **kwargs) + + @Appender( + """ + See Also + -------- + DataFrame.plot.bar: Vertical bar plot. + DataFrame.plot : Make plots of DataFrame using matplotlib. + matplotlib.axes.Axes.bar : Plot a vertical bar plot using matplotlib. + + Examples + -------- + Basic example + + .. plot:: + :context: close-figs + + >>> df = pd.DataFrame({'lab': ['A', 'B', 'C'], 'val': [10, 30, 20]}) + >>> ax = df.plot.barh(x='lab', y='val') + + Plot a whole DataFrame to a horizontal bar plot + + .. plot:: + :context: close-figs + + >>> speed = [0.1, 17.5, 40, 48, 52, 69, 88] + >>> lifespan = [2, 8, 70, 1.5, 25, 12, 28] + >>> index = ['snail', 'pig', 'elephant', + ... 'rabbit', 'giraffe', 'coyote', 'horse'] + >>> df = pd.DataFrame({'speed': speed, + ... 'lifespan': lifespan}, index=index) + >>> ax = df.plot.barh() + + Plot stacked barh charts for the DataFrame + + .. plot:: + :context: close-figs + + >>> ax = df.plot.barh(stacked=True) + + We can specify colors for each column + + .. plot:: + :context: close-figs + + >>> ax = df.plot.barh(color={"speed": "red", "lifespan": "green"}) + + Plot a column of the DataFrame to a horizontal bar plot + + .. plot:: + :context: close-figs + + >>> speed = [0.1, 17.5, 40, 48, 52, 69, 88] + >>> lifespan = [2, 8, 70, 1.5, 25, 12, 28] + >>> index = ['snail', 'pig', 'elephant', + ... 'rabbit', 'giraffe', 'coyote', 'horse'] + >>> df = pd.DataFrame({'speed': speed, + ... 'lifespan': lifespan}, index=index) + >>> ax = df.plot.barh(y='speed') + + Plot DataFrame versus the desired column + + .. plot:: + :context: close-figs + + >>> speed = [0.1, 17.5, 40, 48, 52, 69, 88] + >>> lifespan = [2, 8, 70, 1.5, 25, 12, 28] + >>> index = ['snail', 'pig', 'elephant', + ... 'rabbit', 'giraffe', 'coyote', 'horse'] + >>> df = pd.DataFrame({'speed': speed, + ... 'lifespan': lifespan}, index=index) + >>> ax = df.plot.barh(x='lifespan') + """ + ) + @Substitution(kind="bar") + @Appender(_bar_or_line_doc) + def barh( + self, x: Hashable | None = None, y: Hashable | None = None, **kwargs + ) -> PlotAccessor: + """ + Make a horizontal bar plot. + + A horizontal bar plot is a plot that presents quantitative data with + rectangular bars with lengths proportional to the values that they + represent. A bar plot shows comparisons among discrete categories. One + axis of the plot shows the specific categories being compared, and the + other axis represents a measured value. + """ + return self(kind="barh", x=x, y=y, **kwargs) + + def box(self, by: IndexLabel | None = None, **kwargs) -> PlotAccessor: + r""" + Make a box plot of the DataFrame columns. + + A box plot is a method for graphically depicting groups of numerical + data through their quartiles. + The box extends from the Q1 to Q3 quartile values of the data, + with a line at the median (Q2). The whiskers extend from the edges + of box to show the range of the data. The position of the whiskers + is set by default to 1.5*IQR (IQR = Q3 - Q1) from the edges of the + box. Outlier points are those past the end of the whiskers. + + For further details see Wikipedia's + entry for `boxplot `__. + + A consideration when using this chart is that the box and the whiskers + can overlap, which is very common when plotting small sets of data. + + Parameters + ---------- + by : str or sequence + Column in the DataFrame to group by. + + .. versionchanged:: 1.4.0 + + Previously, `by` is silently ignore and makes no groupings + + **kwargs + Additional keywords are documented in + :meth:`DataFrame.plot`. + + Returns + ------- + :class:`matplotlib.axes.Axes` or numpy.ndarray of them + + See Also + -------- + DataFrame.boxplot: Another method to draw a box plot. + Series.plot.box: Draw a box plot from a Series object. + matplotlib.pyplot.boxplot: Draw a box plot in matplotlib. + + Examples + -------- + Draw a box plot from a DataFrame with four columns of randomly + generated data. + + .. plot:: + :context: close-figs + + >>> data = np.random.randn(25, 4) + >>> df = pd.DataFrame(data, columns=list('ABCD')) + >>> ax = df.plot.box() + + You can also generate groupings if you specify the `by` parameter (which + can take a column name, or a list or tuple of column names): + + .. versionchanged:: 1.4.0 + + .. plot:: + :context: close-figs + + >>> age_list = [8, 10, 12, 14, 72, 74, 76, 78, 20, 25, 30, 35, 60, 85] + >>> df = pd.DataFrame({"gender": list("MMMMMMMMFFFFFF"), "age": age_list}) + >>> ax = df.plot.box(column="age", by="gender", figsize=(10, 8)) + """ + return self(kind="box", by=by, **kwargs) + + def hist( + self, by: IndexLabel | None = None, bins: int = 10, **kwargs + ) -> PlotAccessor: + """ + Draw one histogram of the DataFrame's columns. + + A histogram is a representation of the distribution of data. + This function groups the values of all given Series in the DataFrame + into bins and draws all bins in one :class:`matplotlib.axes.Axes`. + This is useful when the DataFrame's Series are in a similar scale. + + Parameters + ---------- + by : str or sequence, optional + Column in the DataFrame to group by. + + .. versionchanged:: 1.4.0 + + Previously, `by` is silently ignore and makes no groupings + + bins : int, default 10 + Number of histogram bins to be used. + **kwargs + Additional keyword arguments are documented in + :meth:`DataFrame.plot`. + + Returns + ------- + class:`matplotlib.AxesSubplot` + Return a histogram plot. + + See Also + -------- + DataFrame.hist : Draw histograms per DataFrame's Series. + Series.hist : Draw a histogram with Series' data. + + Examples + -------- + When we roll a die 6000 times, we expect to get each value around 1000 + times. But when we roll two dice and sum the result, the distribution + is going to be quite different. A histogram illustrates those + distributions. + + .. plot:: + :context: close-figs + + >>> df = pd.DataFrame(np.random.randint(1, 7, 6000), columns=['one']) + >>> df['two'] = df['one'] + np.random.randint(1, 7, 6000) + >>> ax = df.plot.hist(bins=12, alpha=0.5) + + A grouped histogram can be generated by providing the parameter `by` (which + can be a column name, or a list of column names): + + .. plot:: + :context: close-figs + + >>> age_list = [8, 10, 12, 14, 72, 74, 76, 78, 20, 25, 30, 35, 60, 85] + >>> df = pd.DataFrame({"gender": list("MMMMMMMMFFFFFF"), "age": age_list}) + >>> ax = df.plot.hist(column=["age"], by="gender", figsize=(10, 8)) + """ + return self(kind="hist", by=by, bins=bins, **kwargs) + + def kde( + self, + bw_method: Literal["scott", "silverman"] | float | Callable | None = None, + ind: np.ndarray | int | None = None, + **kwargs, + ) -> PlotAccessor: + """ + Generate Kernel Density Estimate plot using Gaussian kernels. + + In statistics, `kernel density estimation`_ (KDE) is a non-parametric + way to estimate the probability density function (PDF) of a random + variable. This function uses Gaussian kernels and includes automatic + bandwidth determination. + + .. _kernel density estimation: + https://en.wikipedia.org/wiki/Kernel_density_estimation + + Parameters + ---------- + bw_method : str, scalar or callable, optional + The method used to calculate the estimator bandwidth. This can be + 'scott', 'silverman', a scalar constant or a callable. + If None (default), 'scott' is used. + See :class:`scipy.stats.gaussian_kde` for more information. + ind : NumPy array or int, optional + Evaluation points for the estimated PDF. If None (default), + 1000 equally spaced points are used. If `ind` is a NumPy array, the + KDE is evaluated at the points passed. If `ind` is an integer, + `ind` number of equally spaced points are used. + **kwargs + Additional keyword arguments are documented in + :meth:`DataFrame.plot`. + + Returns + ------- + matplotlib.axes.Axes or numpy.ndarray of them + + See Also + -------- + scipy.stats.gaussian_kde : Representation of a kernel-density + estimate using Gaussian kernels. This is the function used + internally to estimate the PDF. + + Examples + -------- + Given a Series of points randomly sampled from an unknown + distribution, estimate its PDF using KDE with automatic + bandwidth determination and plot the results, evaluating them at + 1000 equally spaced points (default): + + .. plot:: + :context: close-figs + + >>> s = pd.Series([1, 2, 2.5, 3, 3.5, 4, 5]) + >>> ax = s.plot.kde() + + A scalar bandwidth can be specified. Using a small bandwidth value can + lead to over-fitting, while using a large bandwidth value may result + in under-fitting: + + .. plot:: + :context: close-figs + + >>> ax = s.plot.kde(bw_method=0.3) + + .. plot:: + :context: close-figs + + >>> ax = s.plot.kde(bw_method=3) + + Finally, the `ind` parameter determines the evaluation points for the + plot of the estimated PDF: + + .. plot:: + :context: close-figs + + >>> ax = s.plot.kde(ind=[1, 2, 3, 4, 5]) + + For DataFrame, it works in the same way: + + .. plot:: + :context: close-figs + + >>> df = pd.DataFrame({ + ... 'x': [1, 2, 2.5, 3, 3.5, 4, 5], + ... 'y': [4, 4, 4.5, 5, 5.5, 6, 6], + ... }) + >>> ax = df.plot.kde() + + A scalar bandwidth can be specified. Using a small bandwidth value can + lead to over-fitting, while using a large bandwidth value may result + in under-fitting: + + .. plot:: + :context: close-figs + + >>> ax = df.plot.kde(bw_method=0.3) + + .. plot:: + :context: close-figs + + >>> ax = df.plot.kde(bw_method=3) + + Finally, the `ind` parameter determines the evaluation points for the + plot of the estimated PDF: + + .. plot:: + :context: close-figs + + >>> ax = df.plot.kde(ind=[1, 2, 3, 4, 5, 6]) + """ + return self(kind="kde", bw_method=bw_method, ind=ind, **kwargs) + + density = kde + + def area( + self, + x: Hashable | None = None, + y: Hashable | None = None, + stacked: bool = True, + **kwargs, + ) -> PlotAccessor: + """ + Draw a stacked area plot. + + An area plot displays quantitative data visually. + This function wraps the matplotlib area function. + + Parameters + ---------- + x : label or position, optional + Coordinates for the X axis. By default uses the index. + y : label or position, optional + Column to plot. By default uses all columns. + stacked : bool, default True + Area plots are stacked by default. Set to False to create a + unstacked plot. + **kwargs + Additional keyword arguments are documented in + :meth:`DataFrame.plot`. + + Returns + ------- + matplotlib.axes.Axes or numpy.ndarray + Area plot, or array of area plots if subplots is True. + + See Also + -------- + DataFrame.plot : Make plots of DataFrame using matplotlib / pylab. + + Examples + -------- + Draw an area plot based on basic business metrics: + + .. plot:: + :context: close-figs + + >>> df = pd.DataFrame({ + ... 'sales': [3, 2, 3, 9, 10, 6], + ... 'signups': [5, 5, 6, 12, 14, 13], + ... 'visits': [20, 42, 28, 62, 81, 50], + ... }, index=pd.date_range(start='2018/01/01', end='2018/07/01', + ... freq='ME')) + >>> ax = df.plot.area() + + Area plots are stacked by default. To produce an unstacked plot, + pass ``stacked=False``: + + .. plot:: + :context: close-figs + + >>> ax = df.plot.area(stacked=False) + + Draw an area plot for a single column: + + .. plot:: + :context: close-figs + + >>> ax = df.plot.area(y='sales') + + Draw with a different `x`: + + .. plot:: + :context: close-figs + + >>> df = pd.DataFrame({ + ... 'sales': [3, 2, 3], + ... 'visits': [20, 42, 28], + ... 'day': [1, 2, 3], + ... }) + >>> ax = df.plot.area(x='day') + """ + return self(kind="area", x=x, y=y, stacked=stacked, **kwargs) + + def pie(self, **kwargs) -> PlotAccessor: + """ + Generate a pie plot. + + A pie plot is a proportional representation of the numerical data in a + column. This function wraps :meth:`matplotlib.pyplot.pie` for the + specified column. If no column reference is passed and + ``subplots=True`` a pie plot is drawn for each numerical column + independently. + + Parameters + ---------- + y : int or label, optional + Label or position of the column to plot. + If not provided, ``subplots=True`` argument must be passed. + **kwargs + Keyword arguments to pass on to :meth:`DataFrame.plot`. + + Returns + ------- + matplotlib.axes.Axes or np.ndarray of them + A NumPy array is returned when `subplots` is True. + + See Also + -------- + Series.plot.pie : Generate a pie plot for a Series. + DataFrame.plot : Make plots of a DataFrame. + + Examples + -------- + In the example below we have a DataFrame with the information about + planet's mass and radius. We pass the 'mass' column to the + pie function to get a pie plot. + + .. plot:: + :context: close-figs + + >>> df = pd.DataFrame({'mass': [0.330, 4.87 , 5.97], + ... 'radius': [2439.7, 6051.8, 6378.1]}, + ... index=['Mercury', 'Venus', 'Earth']) + >>> plot = df.plot.pie(y='mass', figsize=(5, 5)) + + .. plot:: + :context: close-figs + + >>> plot = df.plot.pie(subplots=True, figsize=(11, 6)) + """ + if ( + isinstance(self._parent, ABCDataFrame) + and kwargs.get("y", None) is None + and not kwargs.get("subplots", False) + ): + raise ValueError("pie requires either y column or 'subplots=True'") + return self(kind="pie", **kwargs) + + def scatter( + self, + x: Hashable, + y: Hashable, + s: Hashable | Sequence[Hashable] | None = None, + c: Hashable | Sequence[Hashable] | None = None, + **kwargs, + ) -> PlotAccessor: + """ + Create a scatter plot with varying marker point size and color. + + The coordinates of each point are defined by two dataframe columns and + filled circles are used to represent each point. This kind of plot is + useful to see complex correlations between two variables. Points could + be for instance natural 2D coordinates like longitude and latitude in + a map or, in general, any pair of metrics that can be plotted against + each other. + + Parameters + ---------- + x : int or str + The column name or column position to be used as horizontal + coordinates for each point. + y : int or str + The column name or column position to be used as vertical + coordinates for each point. + s : str, scalar or array-like, optional + The size of each point. Possible values are: + + - A string with the name of the column to be used for marker's size. + + - A single scalar so all points have the same size. + + - A sequence of scalars, which will be used for each point's size + recursively. For instance, when passing [2,14] all points size + will be either 2 or 14, alternatively. + + c : str, int or array-like, optional + The color of each point. Possible values are: + + - A single color string referred to by name, RGB or RGBA code, + for instance 'red' or '#a98d19'. + + - A sequence of color strings referred to by name, RGB or RGBA + code, which will be used for each point's color recursively. For + instance ['green','yellow'] all points will be filled in green or + yellow, alternatively. + + - A column name or position whose values will be used to color the + marker points according to a colormap. + + **kwargs + Keyword arguments to pass on to :meth:`DataFrame.plot`. + + Returns + ------- + :class:`matplotlib.axes.Axes` or numpy.ndarray of them + + See Also + -------- + matplotlib.pyplot.scatter : Scatter plot using multiple input data + formats. + + Examples + -------- + Let's see how to draw a scatter plot using coordinates from the values + in a DataFrame's columns. + + .. plot:: + :context: close-figs + + >>> df = pd.DataFrame([[5.1, 3.5, 0], [4.9, 3.0, 0], [7.0, 3.2, 1], + ... [6.4, 3.2, 1], [5.9, 3.0, 2]], + ... columns=['length', 'width', 'species']) + >>> ax1 = df.plot.scatter(x='length', + ... y='width', + ... c='DarkBlue') + + And now with the color determined by a column as well. + + .. plot:: + :context: close-figs + + >>> ax2 = df.plot.scatter(x='length', + ... y='width', + ... c='species', + ... colormap='viridis') + """ + return self(kind="scatter", x=x, y=y, s=s, c=c, **kwargs) + + def hexbin( + self, + x: Hashable, + y: Hashable, + C: Hashable | None = None, + reduce_C_function: Callable | None = None, + gridsize: int | tuple[int, int] | None = None, + **kwargs, + ) -> PlotAccessor: + """ + Generate a hexagonal binning plot. + + Generate a hexagonal binning plot of `x` versus `y`. If `C` is `None` + (the default), this is a histogram of the number of occurrences + of the observations at ``(x[i], y[i])``. + + If `C` is specified, specifies values at given coordinates + ``(x[i], y[i])``. These values are accumulated for each hexagonal + bin and then reduced according to `reduce_C_function`, + having as default the NumPy's mean function (:meth:`numpy.mean`). + (If `C` is specified, it must also be a 1-D sequence + of the same length as `x` and `y`, or a column label.) + + Parameters + ---------- + x : int or str + The column label or position for x points. + y : int or str + The column label or position for y points. + C : int or str, optional + The column label or position for the value of `(x, y)` point. + reduce_C_function : callable, default `np.mean` + Function of one argument that reduces all the values in a bin to + a single number (e.g. `np.mean`, `np.max`, `np.sum`, `np.std`). + gridsize : int or tuple of (int, int), default 100 + The number of hexagons in the x-direction. + The corresponding number of hexagons in the y-direction is + chosen in a way that the hexagons are approximately regular. + Alternatively, gridsize can be a tuple with two elements + specifying the number of hexagons in the x-direction and the + y-direction. + **kwargs + Additional keyword arguments are documented in + :meth:`DataFrame.plot`. + + Returns + ------- + matplotlib.AxesSubplot + The matplotlib ``Axes`` on which the hexbin is plotted. + + See Also + -------- + DataFrame.plot : Make plots of a DataFrame. + matplotlib.pyplot.hexbin : Hexagonal binning plot using matplotlib, + the matplotlib function that is used under the hood. + + Examples + -------- + The following examples are generated with random data from + a normal distribution. + + .. plot:: + :context: close-figs + + >>> n = 10000 + >>> df = pd.DataFrame({'x': np.random.randn(n), + ... 'y': np.random.randn(n)}) + >>> ax = df.plot.hexbin(x='x', y='y', gridsize=20) + + The next example uses `C` and `np.sum` as `reduce_C_function`. + Note that `'observations'` values ranges from 1 to 5 but the result + plot shows values up to more than 25. This is because of the + `reduce_C_function`. + + .. plot:: + :context: close-figs + + >>> n = 500 + >>> df = pd.DataFrame({ + ... 'coord_x': np.random.uniform(-3, 3, size=n), + ... 'coord_y': np.random.uniform(30, 50, size=n), + ... 'observations': np.random.randint(1,5, size=n) + ... }) + >>> ax = df.plot.hexbin(x='coord_x', + ... y='coord_y', + ... C='observations', + ... reduce_C_function=np.sum, + ... gridsize=10, + ... cmap="viridis") + """ + if reduce_C_function is not None: + kwargs["reduce_C_function"] = reduce_C_function + if gridsize is not None: + kwargs["gridsize"] = gridsize + + return self(kind="hexbin", x=x, y=y, C=C, **kwargs) + + +_backends: dict[str, types.ModuleType] = {} + + +def _load_backend(backend: str) -> types.ModuleType: + """ + Load a pandas plotting backend. + + Parameters + ---------- + backend : str + The identifier for the backend. Either an entrypoint item registered + with importlib.metadata, "matplotlib", or a module name. + + Returns + ------- + types.ModuleType + The imported backend. + """ + from importlib.metadata import entry_points + + if backend == "matplotlib": + # Because matplotlib is an optional dependency and first-party backend, + # we need to attempt an import here to raise an ImportError if needed. + try: + module = importlib.import_module("pandas.plotting._matplotlib") + except ImportError: + raise ImportError( + "matplotlib is required for plotting when the " + 'default backend "matplotlib" is selected.' + ) from None + return module + + found_backend = False + + eps = entry_points() + key = "pandas_plotting_backends" + # entry_points lost dict API ~ PY 3.10 + # https://github.com/python/importlib_metadata/issues/298 + if hasattr(eps, "select"): + entry = eps.select(group=key) + else: + # Argument 2 to "get" of "dict" has incompatible type "Tuple[]"; + # expected "EntryPoints" [arg-type] + entry = eps.get(key, ()) # type: ignore[arg-type] + for entry_point in entry: + found_backend = entry_point.name == backend + if found_backend: + module = entry_point.load() + break + + if not found_backend: + # Fall back to unregistered, module name approach. + try: + module = importlib.import_module(backend) + found_backend = True + except ImportError: + # We re-raise later on. + pass + + if found_backend: + if hasattr(module, "plot"): + # Validate that the interface is implemented when the option is set, + # rather than at plot time. + return module + + raise ValueError( + f"Could not find plotting backend '{backend}'. Ensure that you've " + f"installed the package providing the '{backend}' entrypoint, or that " + "the package has a top-level `.plot` method." + ) + + +def _get_plot_backend(backend: str | None = None): + """ + Return the plotting backend to use (e.g. `pandas.plotting._matplotlib`). + + The plotting system of pandas uses matplotlib by default, but the idea here + is that it can also work with other third-party backends. This function + returns the module which provides a top-level `.plot` method that will + actually do the plotting. The backend is specified from a string, which + either comes from the keyword argument `backend`, or, if not specified, from + the option `pandas.options.plotting.backend`. All the rest of the code in + this file uses the backend specified there for the plotting. + + The backend is imported lazily, as matplotlib is a soft dependency, and + pandas can be used without it being installed. + + Notes + ----- + Modifies `_backends` with imported backend as a side effect. + """ + backend_str: str = backend or get_option("plotting.backend") + + if backend_str in _backends: + return _backends[backend_str] + + module = _load_backend(backend_str) + _backends[backend_str] = module + return module diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..75c61da03795af0d4f60cd4d4a8b8e0dd45e3d5e --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/__init__.py @@ -0,0 +1,93 @@ +from __future__ import annotations + +from typing import TYPE_CHECKING + +from pandas.plotting._matplotlib.boxplot import ( + BoxPlot, + boxplot, + boxplot_frame, + boxplot_frame_groupby, +) +from pandas.plotting._matplotlib.converter import ( + deregister, + register, +) +from pandas.plotting._matplotlib.core import ( + AreaPlot, + BarhPlot, + BarPlot, + HexBinPlot, + LinePlot, + PiePlot, + ScatterPlot, +) +from pandas.plotting._matplotlib.hist import ( + HistPlot, + KdePlot, + hist_frame, + hist_series, +) +from pandas.plotting._matplotlib.misc import ( + andrews_curves, + autocorrelation_plot, + bootstrap_plot, + lag_plot, + parallel_coordinates, + radviz, + scatter_matrix, +) +from pandas.plotting._matplotlib.tools import table + +if TYPE_CHECKING: + from pandas.plotting._matplotlib.core import MPLPlot + +PLOT_CLASSES: dict[str, type[MPLPlot]] = { + "line": LinePlot, + "bar": BarPlot, + "barh": BarhPlot, + "box": BoxPlot, + "hist": HistPlot, + "kde": KdePlot, + "area": AreaPlot, + "pie": PiePlot, + "scatter": ScatterPlot, + "hexbin": HexBinPlot, +} + + +def plot(data, kind, **kwargs): + # Importing pyplot at the top of the file (before the converters are + # registered) causes problems in matplotlib 2 (converters seem to not + # work) + import matplotlib.pyplot as plt + + if kwargs.pop("reuse_plot", False): + ax = kwargs.get("ax") + if ax is None and len(plt.get_fignums()) > 0: + with plt.rc_context(): + ax = plt.gca() + kwargs["ax"] = getattr(ax, "left_ax", ax) + plot_obj = PLOT_CLASSES[kind](data, **kwargs) + plot_obj.generate() + plot_obj.draw() + return plot_obj.result + + +__all__ = [ + "plot", + "hist_series", + "hist_frame", + "boxplot", + "boxplot_frame", + "boxplot_frame_groupby", + "table", + "andrews_curves", + "autocorrelation_plot", + "bootstrap_plot", + "lag_plot", + "parallel_coordinates", + "radviz", + "scatter_matrix", + "register", + "deregister", +] diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/boxplot.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/boxplot.py new file mode 100644 index 0000000000000000000000000000000000000000..80f0349b205e6072abeb63c4727a1efa060b2d36 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/boxplot.py @@ -0,0 +1,575 @@ +from __future__ import annotations + +from typing import ( + TYPE_CHECKING, + Literal, + NamedTuple, +) +import warnings + +import matplotlib as mpl +from matplotlib.artist import setp +import numpy as np + +from pandas._libs import lib +from pandas.util._decorators import cache_readonly +from pandas.util._exceptions import find_stack_level + +from pandas.core.dtypes.common import is_dict_like +from pandas.core.dtypes.generic import ABCSeries +from pandas.core.dtypes.missing import remove_na_arraylike + +import pandas as pd +import pandas.core.common as com +from pandas.util.version import Version + +from pandas.io.formats.printing import pprint_thing +from pandas.plotting._matplotlib.core import ( + LinePlot, + MPLPlot, +) +from pandas.plotting._matplotlib.groupby import create_iter_data_given_by +from pandas.plotting._matplotlib.style import get_standard_colors +from pandas.plotting._matplotlib.tools import ( + create_subplots, + flatten_axes, + maybe_adjust_figure, +) + +if TYPE_CHECKING: + from collections.abc import Collection + + from matplotlib.axes import Axes + from matplotlib.figure import Figure + from matplotlib.lines import Line2D + + from pandas._typing import MatplotlibColor + + +def _set_ticklabels(ax: Axes, labels: list[str], is_vertical: bool, **kwargs) -> None: + """Set the tick labels of a given axis. + + Due to https://github.com/matplotlib/matplotlib/pull/17266, we need to handle the + case of repeated ticks (due to `FixedLocator`) and thus we duplicate the number of + labels. + """ + ticks = ax.get_xticks() if is_vertical else ax.get_yticks() + if len(ticks) != len(labels): + i, remainder = divmod(len(ticks), len(labels)) + if Version(mpl.__version__) < Version("3.10"): + assert remainder == 0, remainder + labels *= i + if is_vertical: + ax.set_xticklabels(labels, **kwargs) + else: + ax.set_yticklabels(labels, **kwargs) + + +class BoxPlot(LinePlot): + @property + def _kind(self) -> Literal["box"]: + return "box" + + _layout_type = "horizontal" + + _valid_return_types = (None, "axes", "dict", "both") + + class BP(NamedTuple): + # namedtuple to hold results + ax: Axes + lines: dict[str, list[Line2D]] + + def __init__(self, data, return_type: str = "axes", **kwargs) -> None: + if return_type not in self._valid_return_types: + raise ValueError("return_type must be {None, 'axes', 'dict', 'both'}") + + self.return_type = return_type + # Do not call LinePlot.__init__ which may fill nan + MPLPlot.__init__(self, data, **kwargs) # pylint: disable=non-parent-init-called + + if self.subplots: + # Disable label ax sharing. Otherwise, all subplots shows last + # column label + if self.orientation == "vertical": + self.sharex = False + else: + self.sharey = False + + # error: Signature of "_plot" incompatible with supertype "MPLPlot" + @classmethod + def _plot( # type: ignore[override] + cls, ax: Axes, y: np.ndarray, column_num=None, return_type: str = "axes", **kwds + ): + ys: np.ndarray | list[np.ndarray] + if y.ndim == 2: + ys = [remove_na_arraylike(v) for v in y] + # Boxplot fails with empty arrays, so need to add a NaN + # if any cols are empty + # GH 8181 + ys = [v if v.size > 0 else np.array([np.nan]) for v in ys] + else: + ys = remove_na_arraylike(y) + bp = ax.boxplot(ys, **kwds) + + if return_type == "dict": + return bp, bp + elif return_type == "both": + return cls.BP(ax=ax, lines=bp), bp + else: + return ax, bp + + def _validate_color_args(self, color, colormap): + if color is lib.no_default: + return None + + if colormap is not None: + warnings.warn( + "'color' and 'colormap' cannot be used " + "simultaneously. Using 'color'", + stacklevel=find_stack_level(), + ) + + if isinstance(color, dict): + valid_keys = ["boxes", "whiskers", "medians", "caps"] + for key in color: + if key not in valid_keys: + raise ValueError( + f"color dict contains invalid key '{key}'. " + f"The key must be either {valid_keys}" + ) + return color + + @cache_readonly + def _color_attrs(self): + # get standard colors for default + # use 2 colors by default, for box/whisker and median + # flier colors isn't needed here + # because it can be specified by ``sym`` kw + return get_standard_colors(num_colors=3, colormap=self.colormap, color=None) + + @cache_readonly + def _boxes_c(self): + return self._color_attrs[0] + + @cache_readonly + def _whiskers_c(self): + return self._color_attrs[0] + + @cache_readonly + def _medians_c(self): + return self._color_attrs[2] + + @cache_readonly + def _caps_c(self): + return self._color_attrs[0] + + def _get_colors( + self, + num_colors=None, + color_kwds: dict[str, MatplotlibColor] + | MatplotlibColor + | Collection[MatplotlibColor] + | None = "color", + ) -> None: + pass + + def maybe_color_bp(self, bp) -> None: + if isinstance(self.color, dict): + boxes = self.color.get("boxes", self._boxes_c) + whiskers = self.color.get("whiskers", self._whiskers_c) + medians = self.color.get("medians", self._medians_c) + caps = self.color.get("caps", self._caps_c) + else: + # Other types are forwarded to matplotlib + # If None, use default colors + boxes = self.color or self._boxes_c + whiskers = self.color or self._whiskers_c + medians = self.color or self._medians_c + caps = self.color or self._caps_c + + color_tup = (boxes, whiskers, medians, caps) + maybe_color_bp(bp, color_tup=color_tup, **self.kwds) + + def _make_plot(self, fig: Figure) -> None: + if self.subplots: + self._return_obj = pd.Series(dtype=object) + + # Re-create iterated data if `by` is assigned by users + data = ( + create_iter_data_given_by(self.data, self._kind) + if self.by is not None + else self.data + ) + + # error: Argument "data" to "_iter_data" of "MPLPlot" has + # incompatible type "object"; expected "DataFrame | + # dict[Hashable, Series | DataFrame]" + for i, (label, y) in enumerate(self._iter_data(data=data)): # type: ignore[arg-type] + ax = self._get_ax(i) + kwds = self.kwds.copy() + + # When by is applied, show title for subplots to know which group it is + # just like df.boxplot, and need to apply T on y to provide right input + if self.by is not None: + y = y.T + ax.set_title(pprint_thing(label)) + + # When `by` is assigned, the ticklabels will become unique grouped + # values, instead of label which is used as subtitle in this case. + # error: "Index" has no attribute "levels"; maybe "nlevels"? + levels = self.data.columns.levels # type: ignore[attr-defined] + ticklabels = [pprint_thing(col) for col in levels[0]] + else: + ticklabels = [pprint_thing(label)] + + ret, bp = self._plot( + ax, y, column_num=i, return_type=self.return_type, **kwds + ) + self.maybe_color_bp(bp) + self._return_obj[label] = ret + _set_ticklabels( + ax=ax, labels=ticklabels, is_vertical=self.orientation == "vertical" + ) + else: + y = self.data.values.T + ax = self._get_ax(0) + kwds = self.kwds.copy() + + ret, bp = self._plot( + ax, y, column_num=0, return_type=self.return_type, **kwds + ) + self.maybe_color_bp(bp) + self._return_obj = ret + + labels = [pprint_thing(left) for left in self.data.columns] + if not self.use_index: + labels = [pprint_thing(key) for key in range(len(labels))] + _set_ticklabels( + ax=ax, labels=labels, is_vertical=self.orientation == "vertical" + ) + + def _make_legend(self) -> None: + pass + + def _post_plot_logic(self, ax: Axes, data) -> None: + # GH 45465: make sure that the boxplot doesn't ignore xlabel/ylabel + if self.xlabel: + ax.set_xlabel(pprint_thing(self.xlabel)) + if self.ylabel: + ax.set_ylabel(pprint_thing(self.ylabel)) + + @property + def orientation(self) -> Literal["horizontal", "vertical"]: + if self.kwds.get("vert", True): + return "vertical" + else: + return "horizontal" + + @property + def result(self): + if self.return_type is None: + return super().result + else: + return self._return_obj + + +def maybe_color_bp(bp, color_tup, **kwds) -> None: + # GH#30346, when users specifying those arguments explicitly, our defaults + # for these four kwargs should be overridden; if not, use Pandas settings + if not kwds.get("boxprops"): + setp(bp["boxes"], color=color_tup[0], alpha=1) + if not kwds.get("whiskerprops"): + setp(bp["whiskers"], color=color_tup[1], alpha=1) + if not kwds.get("medianprops"): + setp(bp["medians"], color=color_tup[2], alpha=1) + if not kwds.get("capprops"): + setp(bp["caps"], color=color_tup[3], alpha=1) + + +def _grouped_plot_by_column( + plotf, + data, + columns=None, + by=None, + numeric_only: bool = True, + grid: bool = False, + figsize: tuple[float, float] | None = None, + ax=None, + layout=None, + return_type=None, + **kwargs, +): + grouped = data.groupby(by, observed=False) + if columns is None: + if not isinstance(by, (list, tuple)): + by = [by] + columns = data._get_numeric_data().columns.difference(by) + naxes = len(columns) + fig, axes = create_subplots( + naxes=naxes, + sharex=kwargs.pop("sharex", True), + sharey=kwargs.pop("sharey", True), + figsize=figsize, + ax=ax, + layout=layout, + ) + + _axes = flatten_axes(axes) + + # GH 45465: move the "by" label based on "vert" + xlabel, ylabel = kwargs.pop("xlabel", None), kwargs.pop("ylabel", None) + if kwargs.get("vert", True): + xlabel = xlabel or by + else: + ylabel = ylabel or by + + ax_values = [] + + for i, col in enumerate(columns): + ax = _axes[i] + gp_col = grouped[col] + keys, values = zip(*gp_col) + re_plotf = plotf(keys, values, ax, xlabel=xlabel, ylabel=ylabel, **kwargs) + ax.set_title(col) + ax_values.append(re_plotf) + ax.grid(grid) + + result = pd.Series(ax_values, index=columns, copy=False) + + # Return axes in multiplot case, maybe revisit later # 985 + if return_type is None: + result = axes + + byline = by[0] if len(by) == 1 else by + fig.suptitle(f"Boxplot grouped by {byline}") + maybe_adjust_figure(fig, bottom=0.15, top=0.9, left=0.1, right=0.9, wspace=0.2) + + return result + + +def boxplot( + data, + column=None, + by=None, + ax=None, + fontsize: int | None = None, + rot: int = 0, + grid: bool = True, + figsize: tuple[float, float] | None = None, + layout=None, + return_type=None, + **kwds, +): + import matplotlib.pyplot as plt + + # validate return_type: + if return_type not in BoxPlot._valid_return_types: + raise ValueError("return_type must be {'axes', 'dict', 'both'}") + + if isinstance(data, ABCSeries): + data = data.to_frame("x") + column = "x" + + def _get_colors(): + # num_colors=3 is required as method maybe_color_bp takes the colors + # in positions 0 and 2. + # if colors not provided, use same defaults as DataFrame.plot.box + result = get_standard_colors(num_colors=3) + result = np.take(result, [0, 0, 2]) + result = np.append(result, "k") + + colors = kwds.pop("color", None) + if colors: + if is_dict_like(colors): + # replace colors in result array with user-specified colors + # taken from the colors dict parameter + # "boxes" value placed in position 0, "whiskers" in 1, etc. + valid_keys = ["boxes", "whiskers", "medians", "caps"] + key_to_index = dict(zip(valid_keys, range(4))) + for key, value in colors.items(): + if key in valid_keys: + result[key_to_index[key]] = value + else: + raise ValueError( + f"color dict contains invalid key '{key}'. " + f"The key must be either {valid_keys}" + ) + else: + result.fill(colors) + + return result + + def plot_group(keys, values, ax: Axes, **kwds): + # GH 45465: xlabel/ylabel need to be popped out before plotting happens + xlabel, ylabel = kwds.pop("xlabel", None), kwds.pop("ylabel", None) + if xlabel: + ax.set_xlabel(pprint_thing(xlabel)) + if ylabel: + ax.set_ylabel(pprint_thing(ylabel)) + + keys = [pprint_thing(x) for x in keys] + values = [np.asarray(remove_na_arraylike(v), dtype=object) for v in values] + bp = ax.boxplot(values, **kwds) + if fontsize is not None: + ax.tick_params(axis="both", labelsize=fontsize) + + # GH 45465: x/y are flipped when "vert" changes + _set_ticklabels( + ax=ax, labels=keys, is_vertical=kwds.get("vert", True), rotation=rot + ) + maybe_color_bp(bp, color_tup=colors, **kwds) + + # Return axes in multiplot case, maybe revisit later # 985 + if return_type == "dict": + return bp + elif return_type == "both": + return BoxPlot.BP(ax=ax, lines=bp) + else: + return ax + + colors = _get_colors() + if column is None: + columns = None + elif isinstance(column, (list, tuple)): + columns = column + else: + columns = [column] + + if by is not None: + # Prefer array return type for 2-D plots to match the subplot layout + # https://github.com/pandas-dev/pandas/pull/12216#issuecomment-241175580 + result = _grouped_plot_by_column( + plot_group, + data, + columns=columns, + by=by, + grid=grid, + figsize=figsize, + ax=ax, + layout=layout, + return_type=return_type, + **kwds, + ) + else: + if return_type is None: + return_type = "axes" + if layout is not None: + raise ValueError("The 'layout' keyword is not supported when 'by' is None") + + if ax is None: + rc = {"figure.figsize": figsize} if figsize is not None else {} + with plt.rc_context(rc): + ax = plt.gca() + data = data._get_numeric_data() + naxes = len(data.columns) + if naxes == 0: + raise ValueError( + "boxplot method requires numerical columns, nothing to plot." + ) + if columns is None: + columns = data.columns + else: + data = data[columns] + + result = plot_group(columns, data.values.T, ax, **kwds) + ax.grid(grid) + + return result + + +def boxplot_frame( + self, + column=None, + by=None, + ax=None, + fontsize: int | None = None, + rot: int = 0, + grid: bool = True, + figsize: tuple[float, float] | None = None, + layout=None, + return_type=None, + **kwds, +): + import matplotlib.pyplot as plt + + ax = boxplot( + self, + column=column, + by=by, + ax=ax, + fontsize=fontsize, + grid=grid, + rot=rot, + figsize=figsize, + layout=layout, + return_type=return_type, + **kwds, + ) + plt.draw_if_interactive() + return ax + + +def boxplot_frame_groupby( + grouped, + subplots: bool = True, + column=None, + fontsize: int | None = None, + rot: int = 0, + grid: bool = True, + ax=None, + figsize: tuple[float, float] | None = None, + layout=None, + sharex: bool = False, + sharey: bool = True, + **kwds, +): + if subplots is True: + naxes = len(grouped) + fig, axes = create_subplots( + naxes=naxes, + squeeze=False, + ax=ax, + sharex=sharex, + sharey=sharey, + figsize=figsize, + layout=layout, + ) + axes = flatten_axes(axes) + + ret = pd.Series(dtype=object) + + for (key, group), ax in zip(grouped, axes): + d = group.boxplot( + ax=ax, column=column, fontsize=fontsize, rot=rot, grid=grid, **kwds + ) + ax.set_title(pprint_thing(key)) + ret.loc[key] = d + maybe_adjust_figure(fig, bottom=0.15, top=0.9, left=0.1, right=0.9, wspace=0.2) + else: + keys, frames = zip(*grouped) + if grouped.axis == 0: + df = pd.concat(frames, keys=keys, axis=1) + elif len(frames) > 1: + df = frames[0].join(frames[1::]) + else: + df = frames[0] + + # GH 16748, DataFrameGroupby fails when subplots=False and `column` argument + # is assigned, and in this case, since `df` here becomes MI after groupby, + # so we need to couple the keys (grouped values) and column (original df + # column) together to search for subset to plot + if column is not None: + column = com.convert_to_list_like(column) + multi_key = pd.MultiIndex.from_product([keys, column]) + column = list(multi_key.values) + ret = df.boxplot( + column=column, + fontsize=fontsize, + rot=rot, + grid=grid, + ax=ax, + figsize=figsize, + layout=layout, + **kwds, + ) + return ret diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/converter.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/converter.py new file mode 100644 index 0000000000000000000000000000000000000000..9acb93ce69a9ca25962139891e6bb1e5e163add8 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/converter.py @@ -0,0 +1,1139 @@ +from __future__ import annotations + +import contextlib +import datetime as pydt +from datetime import ( + datetime, + timedelta, + tzinfo, +) +import functools +from typing import ( + TYPE_CHECKING, + Any, + cast, +) +import warnings + +import matplotlib.dates as mdates +from matplotlib.ticker import ( + AutoLocator, + Formatter, + Locator, +) +from matplotlib.transforms import nonsingular +import matplotlib.units as munits +import numpy as np + +from pandas._libs import lib +from pandas._libs.tslibs import ( + Timestamp, + to_offset, +) +from pandas._libs.tslibs.dtypes import ( + FreqGroup, + periods_per_day, +) +from pandas._typing import ( + F, + npt, +) + +from pandas.core.dtypes.common import ( + is_float, + is_float_dtype, + is_integer, + is_integer_dtype, + is_nested_list_like, +) + +from pandas import ( + Index, + Series, + get_option, +) +import pandas.core.common as com +from pandas.core.indexes.datetimes import date_range +from pandas.core.indexes.period import ( + Period, + PeriodIndex, + period_range, +) +import pandas.core.tools.datetimes as tools + +if TYPE_CHECKING: + from collections.abc import Generator + + from matplotlib.axis import Axis + + from pandas._libs.tslibs.offsets import BaseOffset + + +_mpl_units = {} # Cache for units overwritten by us + + +def get_pairs(): + pairs = [ + (Timestamp, DatetimeConverter), + (Period, PeriodConverter), + (pydt.datetime, DatetimeConverter), + (pydt.date, DatetimeConverter), + (pydt.time, TimeConverter), + (np.datetime64, DatetimeConverter), + ] + return pairs + + +def register_pandas_matplotlib_converters(func: F) -> F: + """ + Decorator applying pandas_converters. + """ + + @functools.wraps(func) + def wrapper(*args, **kwargs): + with pandas_converters(): + return func(*args, **kwargs) + + return cast(F, wrapper) + + +@contextlib.contextmanager +def pandas_converters() -> Generator[None, None, None]: + """ + Context manager registering pandas' converters for a plot. + + See Also + -------- + register_pandas_matplotlib_converters : Decorator that applies this. + """ + value = get_option("plotting.matplotlib.register_converters") + + if value: + # register for True or "auto" + register() + try: + yield + finally: + if value == "auto": + # only deregister for "auto" + deregister() + + +def register() -> None: + pairs = get_pairs() + for type_, cls in pairs: + # Cache previous converter if present + if type_ in munits.registry and not isinstance(munits.registry[type_], cls): + previous = munits.registry[type_] + _mpl_units[type_] = previous + # Replace with pandas converter + munits.registry[type_] = cls() + + +def deregister() -> None: + # Renamed in pandas.plotting.__init__ + for type_, cls in get_pairs(): + # We use type to catch our classes directly, no inheritance + if type(munits.registry.get(type_)) is cls: + munits.registry.pop(type_) + + # restore the old keys + for unit, formatter in _mpl_units.items(): + if type(formatter) not in {DatetimeConverter, PeriodConverter, TimeConverter}: + # make it idempotent by excluding ours. + munits.registry[unit] = formatter + + +def _to_ordinalf(tm: pydt.time) -> float: + tot_sec = tm.hour * 3600 + tm.minute * 60 + tm.second + tm.microsecond / 10**6 + return tot_sec + + +def time2num(d): + if isinstance(d, str): + parsed = Timestamp(d) + return _to_ordinalf(parsed.time()) + if isinstance(d, pydt.time): + return _to_ordinalf(d) + return d + + +class TimeConverter(munits.ConversionInterface): + @staticmethod + def convert(value, unit, axis): + valid_types = (str, pydt.time) + if isinstance(value, valid_types) or is_integer(value) or is_float(value): + return time2num(value) + if isinstance(value, Index): + return value.map(time2num) + if isinstance(value, (list, tuple, np.ndarray, Index)): + return [time2num(x) for x in value] + return value + + @staticmethod + def axisinfo(unit, axis) -> munits.AxisInfo | None: + if unit != "time": + return None + + majloc = AutoLocator() + majfmt = TimeFormatter(majloc) + return munits.AxisInfo(majloc=majloc, majfmt=majfmt, label="time") + + @staticmethod + def default_units(x, axis) -> str: + return "time" + + +# time formatter +class TimeFormatter(Formatter): + def __init__(self, locs) -> None: + self.locs = locs + + def __call__(self, x, pos: int | None = 0) -> str: + """ + Return the time of day as a formatted string. + + Parameters + ---------- + x : float + The time of day specified as seconds since 00:00 (midnight), + with up to microsecond precision. + pos + Unused + + Returns + ------- + str + A string in HH:MM:SS.mmmuuu format. Microseconds, + milliseconds and seconds are only displayed if non-zero. + """ + fmt = "%H:%M:%S.%f" + s = int(x) + msus = round((x - s) * 10**6) + ms = msus // 1000 + us = msus % 1000 + m, s = divmod(s, 60) + h, m = divmod(m, 60) + _, h = divmod(h, 24) + if us != 0: + return pydt.time(h, m, s, msus).strftime(fmt) + elif ms != 0: + return pydt.time(h, m, s, msus).strftime(fmt)[:-3] + elif s != 0: + return pydt.time(h, m, s).strftime("%H:%M:%S") + + return pydt.time(h, m).strftime("%H:%M") + + +# Period Conversion + + +class PeriodConverter(mdates.DateConverter): + @staticmethod + def convert(values, units, axis): + if is_nested_list_like(values): + values = [PeriodConverter._convert_1d(v, units, axis) for v in values] + else: + values = PeriodConverter._convert_1d(values, units, axis) + return values + + @staticmethod + def _convert_1d(values, units, axis): + if not hasattr(axis, "freq"): + raise TypeError("Axis must have `freq` set to convert to Periods") + valid_types = (str, datetime, Period, pydt.date, pydt.time, np.datetime64) + with warnings.catch_warnings(): + warnings.filterwarnings( + "ignore", "Period with BDay freq is deprecated", category=FutureWarning + ) + warnings.filterwarnings( + "ignore", r"PeriodDtype\[B\] is deprecated", category=FutureWarning + ) + if ( + isinstance(values, valid_types) + or is_integer(values) + or is_float(values) + ): + return get_datevalue(values, axis.freq) + elif isinstance(values, PeriodIndex): + return values.asfreq(axis.freq).asi8 + elif isinstance(values, Index): + return values.map(lambda x: get_datevalue(x, axis.freq)) + elif lib.infer_dtype(values, skipna=False) == "period": + # https://github.com/pandas-dev/pandas/issues/24304 + # convert ndarray[period] -> PeriodIndex + return PeriodIndex(values, freq=axis.freq).asi8 + elif isinstance(values, (list, tuple, np.ndarray, Index)): + return [get_datevalue(x, axis.freq) for x in values] + return values + + +def get_datevalue(date, freq): + if isinstance(date, Period): + return date.asfreq(freq).ordinal + elif isinstance(date, (str, datetime, pydt.date, pydt.time, np.datetime64)): + return Period(date, freq).ordinal + elif ( + is_integer(date) + or is_float(date) + or (isinstance(date, (np.ndarray, Index)) and (date.size == 1)) + ): + return date + elif date is None: + return None + raise ValueError(f"Unrecognizable date '{date}'") + + +# Datetime Conversion +class DatetimeConverter(mdates.DateConverter): + @staticmethod + def convert(values, unit, axis): + # values might be a 1-d array, or a list-like of arrays. + if is_nested_list_like(values): + values = [DatetimeConverter._convert_1d(v, unit, axis) for v in values] + else: + values = DatetimeConverter._convert_1d(values, unit, axis) + return values + + @staticmethod + def _convert_1d(values, unit, axis): + def try_parse(values): + try: + return mdates.date2num(tools.to_datetime(values)) + except Exception: + return values + + if isinstance(values, (datetime, pydt.date, np.datetime64, pydt.time)): + return mdates.date2num(values) + elif is_integer(values) or is_float(values): + return values + elif isinstance(values, str): + return try_parse(values) + elif isinstance(values, (list, tuple, np.ndarray, Index, Series)): + if isinstance(values, Series): + # https://github.com/matplotlib/matplotlib/issues/11391 + # Series was skipped. Convert to DatetimeIndex to get asi8 + values = Index(values) + if isinstance(values, Index): + values = values.values + if not isinstance(values, np.ndarray): + values = com.asarray_tuplesafe(values) + + if is_integer_dtype(values) or is_float_dtype(values): + return values + + try: + values = tools.to_datetime(values) + except Exception: + pass + + values = mdates.date2num(values) + + return values + + @staticmethod + def axisinfo(unit: tzinfo | None, axis) -> munits.AxisInfo: + """ + Return the :class:`~matplotlib.units.AxisInfo` for *unit*. + + *unit* is a tzinfo instance or None. + The *axis* argument is required but not used. + """ + tz = unit + + majloc = PandasAutoDateLocator(tz=tz) + majfmt = PandasAutoDateFormatter(majloc, tz=tz) + datemin = pydt.date(2000, 1, 1) + datemax = pydt.date(2010, 1, 1) + + return munits.AxisInfo( + majloc=majloc, majfmt=majfmt, label="", default_limits=(datemin, datemax) + ) + + +class PandasAutoDateFormatter(mdates.AutoDateFormatter): + def __init__(self, locator, tz=None, defaultfmt: str = "%Y-%m-%d") -> None: + mdates.AutoDateFormatter.__init__(self, locator, tz, defaultfmt) + + +class PandasAutoDateLocator(mdates.AutoDateLocator): + def get_locator(self, dmin, dmax): + """Pick the best locator based on a distance.""" + tot_sec = (dmax - dmin).total_seconds() + + if abs(tot_sec) < self.minticks: + self._freq = -1 + locator = MilliSecondLocator(self.tz) + locator.set_axis(self.axis) + + # error: Item "None" of "Axis | _DummyAxis | _AxisWrapper | None" + # has no attribute "get_data_interval" + locator.axis.set_view_interval( # type: ignore[union-attr] + *self.axis.get_view_interval() # type: ignore[union-attr] + ) + locator.axis.set_data_interval( # type: ignore[union-attr] + *self.axis.get_data_interval() # type: ignore[union-attr] + ) + return locator + + return mdates.AutoDateLocator.get_locator(self, dmin, dmax) + + def _get_unit(self): + return MilliSecondLocator.get_unit_generic(self._freq) + + +class MilliSecondLocator(mdates.DateLocator): + UNIT = 1.0 / (24 * 3600 * 1000) + + def __init__(self, tz) -> None: + mdates.DateLocator.__init__(self, tz) + self._interval = 1.0 + + def _get_unit(self): + return self.get_unit_generic(-1) + + @staticmethod + def get_unit_generic(freq): + unit = mdates.RRuleLocator.get_unit_generic(freq) + if unit < 0: + return MilliSecondLocator.UNIT + return unit + + def __call__(self): + # if no data have been set, this will tank with a ValueError + try: + dmin, dmax = self.viewlim_to_dt() + except ValueError: + return [] + + # We need to cap at the endpoints of valid datetime + nmax, nmin = mdates.date2num((dmax, dmin)) + + num = (nmax - nmin) * 86400 * 1000 + max_millis_ticks = 6 + for interval in [1, 10, 50, 100, 200, 500]: + if num <= interval * (max_millis_ticks - 1): + self._interval = interval + break + # We went through the whole loop without breaking, default to 1 + self._interval = 1000.0 + + estimate = (nmax - nmin) / (self._get_unit() * self._get_interval()) + + if estimate > self.MAXTICKS * 2: + raise RuntimeError( + "MillisecondLocator estimated to generate " + f"{estimate:d} ticks from {dmin} to {dmax}: exceeds Locator.MAXTICKS" + f"* 2 ({self.MAXTICKS * 2:d}) " + ) + + interval = self._get_interval() + freq = f"{interval}ms" + tz = self.tz.tzname(None) + st = dmin.replace(tzinfo=None) + ed = dmin.replace(tzinfo=None) + all_dates = date_range(start=st, end=ed, freq=freq, tz=tz).astype(object) + + try: + if len(all_dates) > 0: + locs = self.raise_if_exceeds(mdates.date2num(all_dates)) + return locs + except Exception: # pragma: no cover + pass + + lims = mdates.date2num([dmin, dmax]) + return lims + + def _get_interval(self): + return self._interval + + def autoscale(self): + """ + Set the view limits to include the data range. + """ + # We need to cap at the endpoints of valid datetime + dmin, dmax = self.datalim_to_dt() + + vmin = mdates.date2num(dmin) + vmax = mdates.date2num(dmax) + + return self.nonsingular(vmin, vmax) + + +def _from_ordinal(x, tz: tzinfo | None = None) -> datetime: + ix = int(x) + dt = datetime.fromordinal(ix) + remainder = float(x) - ix + hour, remainder = divmod(24 * remainder, 1) + minute, remainder = divmod(60 * remainder, 1) + second, remainder = divmod(60 * remainder, 1) + microsecond = int(1_000_000 * remainder) + if microsecond < 10: + microsecond = 0 # compensate for rounding errors + dt = datetime( + dt.year, dt.month, dt.day, int(hour), int(minute), int(second), microsecond + ) + if tz is not None: + dt = dt.astimezone(tz) + + if microsecond > 999990: # compensate for rounding errors + dt += timedelta(microseconds=1_000_000 - microsecond) + + return dt + + +# Fixed frequency dynamic tick locators and formatters + +# ------------------------------------------------------------------------- +# --- Locators --- +# ------------------------------------------------------------------------- + + +def _get_default_annual_spacing(nyears) -> tuple[int, int]: + """ + Returns a default spacing between consecutive ticks for annual data. + """ + if nyears < 11: + (min_spacing, maj_spacing) = (1, 1) + elif nyears < 20: + (min_spacing, maj_spacing) = (1, 2) + elif nyears < 50: + (min_spacing, maj_spacing) = (1, 5) + elif nyears < 100: + (min_spacing, maj_spacing) = (5, 10) + elif nyears < 200: + (min_spacing, maj_spacing) = (5, 25) + elif nyears < 600: + (min_spacing, maj_spacing) = (10, 50) + else: + factor = nyears // 1000 + 1 + (min_spacing, maj_spacing) = (factor * 20, factor * 100) + return (min_spacing, maj_spacing) + + +def _period_break(dates: PeriodIndex, period: str) -> npt.NDArray[np.intp]: + """ + Returns the indices where the given period changes. + + Parameters + ---------- + dates : PeriodIndex + Array of intervals to monitor. + period : str + Name of the period to monitor. + """ + mask = _period_break_mask(dates, period) + return np.nonzero(mask)[0] + + +def _period_break_mask(dates: PeriodIndex, period: str) -> npt.NDArray[np.bool_]: + current = getattr(dates, period) + previous = getattr(dates - 1 * dates.freq, period) + return current != previous + + +def has_level_label(label_flags: npt.NDArray[np.intp], vmin: float) -> bool: + """ + Returns true if the ``label_flags`` indicate there is at least one label + for this level. + + if the minimum view limit is not an exact integer, then the first tick + label won't be shown, so we must adjust for that. + """ + if label_flags.size == 0 or ( + label_flags.size == 1 and label_flags[0] == 0 and vmin % 1 > 0.0 + ): + return False + else: + return True + + +def _get_periods_per_ymd(freq: BaseOffset) -> tuple[int, int, int]: + # error: "BaseOffset" has no attribute "_period_dtype_code" + dtype_code = freq._period_dtype_code # type: ignore[attr-defined] + freq_group = FreqGroup.from_period_dtype_code(dtype_code) + + ppd = -1 # placeholder for above-day freqs + + if dtype_code >= FreqGroup.FR_HR.value: + # error: "BaseOffset" has no attribute "_creso" + ppd = periods_per_day(freq._creso) # type: ignore[attr-defined] + ppm = 28 * ppd + ppy = 365 * ppd + elif freq_group == FreqGroup.FR_BUS: + ppm = 19 + ppy = 261 + elif freq_group == FreqGroup.FR_DAY: + ppm = 28 + ppy = 365 + elif freq_group == FreqGroup.FR_WK: + ppm = 3 + ppy = 52 + elif freq_group == FreqGroup.FR_MTH: + ppm = 1 + ppy = 12 + elif freq_group == FreqGroup.FR_QTR: + ppm = -1 # placerholder + ppy = 4 + elif freq_group == FreqGroup.FR_ANN: + ppm = -1 # placeholder + ppy = 1 + else: + raise NotImplementedError(f"Unsupported frequency: {dtype_code}") + + return ppd, ppm, ppy + + +@functools.cache +def _daily_finder(vmin: float, vmax: float, freq: BaseOffset) -> np.ndarray: + # error: "BaseOffset" has no attribute "_period_dtype_code" + dtype_code = freq._period_dtype_code # type: ignore[attr-defined] + + periodsperday, periodspermonth, periodsperyear = _get_periods_per_ymd(freq) + + # save this for later usage + vmin_orig = vmin + (vmin, vmax) = (int(vmin), int(vmax)) + span = vmax - vmin + 1 + + with warnings.catch_warnings(): + warnings.filterwarnings( + "ignore", "Period with BDay freq is deprecated", category=FutureWarning + ) + warnings.filterwarnings( + "ignore", r"PeriodDtype\[B\] is deprecated", category=FutureWarning + ) + dates_ = period_range( + start=Period(ordinal=vmin, freq=freq), + end=Period(ordinal=vmax, freq=freq), + freq=freq, + ) + + # Initialize the output + info = np.zeros( + span, dtype=[("val", np.int64), ("maj", bool), ("min", bool), ("fmt", "|S20")] + ) + info["val"][:] = dates_.asi8 + info["fmt"][:] = "" + info["maj"][[0, -1]] = True + # .. and set some shortcuts + info_maj = info["maj"] + info_min = info["min"] + info_fmt = info["fmt"] + + def first_label(label_flags): + if (label_flags[0] == 0) and (label_flags.size > 1) and ((vmin_orig % 1) > 0.0): + return label_flags[1] + else: + return label_flags[0] + + # Case 1. Less than a month + if span <= periodspermonth: + day_start = _period_break(dates_, "day") + month_start = _period_break(dates_, "month") + year_start = _period_break(dates_, "year") + + def _hour_finder(label_interval: int, force_year_start: bool) -> None: + target = dates_.hour + mask = _period_break_mask(dates_, "hour") + info_maj[day_start] = True + info_min[mask & (target % label_interval == 0)] = True + info_fmt[mask & (target % label_interval == 0)] = "%H:%M" + info_fmt[day_start] = "%H:%M\n%d-%b" + info_fmt[year_start] = "%H:%M\n%d-%b\n%Y" + if force_year_start and not has_level_label(year_start, vmin_orig): + info_fmt[first_label(day_start)] = "%H:%M\n%d-%b\n%Y" + + def _minute_finder(label_interval: int) -> None: + target = dates_.minute + hour_start = _period_break(dates_, "hour") + mask = _period_break_mask(dates_, "minute") + info_maj[hour_start] = True + info_min[mask & (target % label_interval == 0)] = True + info_fmt[mask & (target % label_interval == 0)] = "%H:%M" + info_fmt[day_start] = "%H:%M\n%d-%b" + info_fmt[year_start] = "%H:%M\n%d-%b\n%Y" + + def _second_finder(label_interval: int) -> None: + target = dates_.second + minute_start = _period_break(dates_, "minute") + mask = _period_break_mask(dates_, "second") + info_maj[minute_start] = True + info_min[mask & (target % label_interval == 0)] = True + info_fmt[mask & (target % label_interval == 0)] = "%H:%M:%S" + info_fmt[day_start] = "%H:%M:%S\n%d-%b" + info_fmt[year_start] = "%H:%M:%S\n%d-%b\n%Y" + + if span < periodsperday / 12000: + _second_finder(1) + elif span < periodsperday / 6000: + _second_finder(2) + elif span < periodsperday / 2400: + _second_finder(5) + elif span < periodsperday / 1200: + _second_finder(10) + elif span < periodsperday / 800: + _second_finder(15) + elif span < periodsperday / 400: + _second_finder(30) + elif span < periodsperday / 150: + _minute_finder(1) + elif span < periodsperday / 70: + _minute_finder(2) + elif span < periodsperday / 24: + _minute_finder(5) + elif span < periodsperday / 12: + _minute_finder(15) + elif span < periodsperday / 6: + _minute_finder(30) + elif span < periodsperday / 2.5: + _hour_finder(1, False) + elif span < periodsperday / 1.5: + _hour_finder(2, False) + elif span < periodsperday * 1.25: + _hour_finder(3, False) + elif span < periodsperday * 2.5: + _hour_finder(6, True) + elif span < periodsperday * 4: + _hour_finder(12, True) + else: + info_maj[month_start] = True + info_min[day_start] = True + info_fmt[day_start] = "%d" + info_fmt[month_start] = "%d\n%b" + info_fmt[year_start] = "%d\n%b\n%Y" + if not has_level_label(year_start, vmin_orig): + if not has_level_label(month_start, vmin_orig): + info_fmt[first_label(day_start)] = "%d\n%b\n%Y" + else: + info_fmt[first_label(month_start)] = "%d\n%b\n%Y" + + # Case 2. Less than three months + elif span <= periodsperyear // 4: + month_start = _period_break(dates_, "month") + info_maj[month_start] = True + if dtype_code < FreqGroup.FR_HR.value: + info["min"] = True + else: + day_start = _period_break(dates_, "day") + info["min"][day_start] = True + week_start = _period_break(dates_, "week") + year_start = _period_break(dates_, "year") + info_fmt[week_start] = "%d" + info_fmt[month_start] = "\n\n%b" + info_fmt[year_start] = "\n\n%b\n%Y" + if not has_level_label(year_start, vmin_orig): + if not has_level_label(month_start, vmin_orig): + info_fmt[first_label(week_start)] = "\n\n%b\n%Y" + else: + info_fmt[first_label(month_start)] = "\n\n%b\n%Y" + # Case 3. Less than 14 months ............... + elif span <= 1.15 * periodsperyear: + year_start = _period_break(dates_, "year") + month_start = _period_break(dates_, "month") + week_start = _period_break(dates_, "week") + info_maj[month_start] = True + info_min[week_start] = True + info_min[year_start] = False + info_min[month_start] = False + info_fmt[month_start] = "%b" + info_fmt[year_start] = "%b\n%Y" + if not has_level_label(year_start, vmin_orig): + info_fmt[first_label(month_start)] = "%b\n%Y" + # Case 4. Less than 2.5 years ............... + elif span <= 2.5 * periodsperyear: + year_start = _period_break(dates_, "year") + quarter_start = _period_break(dates_, "quarter") + month_start = _period_break(dates_, "month") + info_maj[quarter_start] = True + info_min[month_start] = True + info_fmt[quarter_start] = "%b" + info_fmt[year_start] = "%b\n%Y" + # Case 4. Less than 4 years ................. + elif span <= 4 * periodsperyear: + year_start = _period_break(dates_, "year") + month_start = _period_break(dates_, "month") + info_maj[year_start] = True + info_min[month_start] = True + info_min[year_start] = False + + month_break = dates_[month_start].month + jan_or_jul = month_start[(month_break == 1) | (month_break == 7)] + info_fmt[jan_or_jul] = "%b" + info_fmt[year_start] = "%b\n%Y" + # Case 5. Less than 11 years ................ + elif span <= 11 * periodsperyear: + year_start = _period_break(dates_, "year") + quarter_start = _period_break(dates_, "quarter") + info_maj[year_start] = True + info_min[quarter_start] = True + info_min[year_start] = False + info_fmt[year_start] = "%Y" + # Case 6. More than 12 years ................ + else: + year_start = _period_break(dates_, "year") + year_break = dates_[year_start].year + nyears = span / periodsperyear + (min_anndef, maj_anndef) = _get_default_annual_spacing(nyears) + major_idx = year_start[(year_break % maj_anndef == 0)] + info_maj[major_idx] = True + minor_idx = year_start[(year_break % min_anndef == 0)] + info_min[minor_idx] = True + info_fmt[major_idx] = "%Y" + + return info + + +@functools.cache +def _monthly_finder(vmin: float, vmax: float, freq: BaseOffset) -> np.ndarray: + _, _, periodsperyear = _get_periods_per_ymd(freq) + + vmin_orig = vmin + (vmin, vmax) = (int(vmin), int(vmax)) + span = vmax - vmin + 1 + + # Initialize the output + info = np.zeros( + span, dtype=[("val", int), ("maj", bool), ("min", bool), ("fmt", "|S8")] + ) + info["val"] = np.arange(vmin, vmax + 1) + dates_ = info["val"] + info["fmt"] = "" + year_start = (dates_ % 12 == 0).nonzero()[0] + info_maj = info["maj"] + info_fmt = info["fmt"] + + if span <= 1.15 * periodsperyear: + info_maj[year_start] = True + info["min"] = True + + info_fmt[:] = "%b" + info_fmt[year_start] = "%b\n%Y" + + if not has_level_label(year_start, vmin_orig): + if dates_.size > 1: + idx = 1 + else: + idx = 0 + info_fmt[idx] = "%b\n%Y" + + elif span <= 2.5 * periodsperyear: + quarter_start = (dates_ % 3 == 0).nonzero() + info_maj[year_start] = True + # TODO: Check the following : is it really info['fmt'] ? + # 2023-09-15 this is reached in test_finder_monthly + info["fmt"][quarter_start] = True + info["min"] = True + + info_fmt[quarter_start] = "%b" + info_fmt[year_start] = "%b\n%Y" + + elif span <= 4 * periodsperyear: + info_maj[year_start] = True + info["min"] = True + + jan_or_jul = (dates_ % 12 == 0) | (dates_ % 12 == 6) + info_fmt[jan_or_jul] = "%b" + info_fmt[year_start] = "%b\n%Y" + + elif span <= 11 * periodsperyear: + quarter_start = (dates_ % 3 == 0).nonzero() + info_maj[year_start] = True + info["min"][quarter_start] = True + + info_fmt[year_start] = "%Y" + + else: + nyears = span / periodsperyear + (min_anndef, maj_anndef) = _get_default_annual_spacing(nyears) + years = dates_[year_start] // 12 + 1 + major_idx = year_start[(years % maj_anndef == 0)] + info_maj[major_idx] = True + info["min"][year_start[(years % min_anndef == 0)]] = True + + info_fmt[major_idx] = "%Y" + + return info + + +@functools.cache +def _quarterly_finder(vmin: float, vmax: float, freq: BaseOffset) -> np.ndarray: + _, _, periodsperyear = _get_periods_per_ymd(freq) + vmin_orig = vmin + (vmin, vmax) = (int(vmin), int(vmax)) + span = vmax - vmin + 1 + + info = np.zeros( + span, dtype=[("val", int), ("maj", bool), ("min", bool), ("fmt", "|S8")] + ) + info["val"] = np.arange(vmin, vmax + 1) + info["fmt"] = "" + dates_ = info["val"] + info_maj = info["maj"] + info_fmt = info["fmt"] + year_start = (dates_ % 4 == 0).nonzero()[0] + + if span <= 3.5 * periodsperyear: + info_maj[year_start] = True + info["min"] = True + + info_fmt[:] = "Q%q" + info_fmt[year_start] = "Q%q\n%F" + if not has_level_label(year_start, vmin_orig): + if dates_.size > 1: + idx = 1 + else: + idx = 0 + info_fmt[idx] = "Q%q\n%F" + + elif span <= 11 * periodsperyear: + info_maj[year_start] = True + info["min"] = True + info_fmt[year_start] = "%F" + + else: + # https://github.com/pandas-dev/pandas/pull/47602 + years = dates_[year_start] // 4 + 1970 + nyears = span / periodsperyear + (min_anndef, maj_anndef) = _get_default_annual_spacing(nyears) + major_idx = year_start[(years % maj_anndef == 0)] + info_maj[major_idx] = True + info["min"][year_start[(years % min_anndef == 0)]] = True + info_fmt[major_idx] = "%F" + + return info + + +@functools.cache +def _annual_finder(vmin: float, vmax: float, freq: BaseOffset) -> np.ndarray: + # Note: small difference here vs other finders in adding 1 to vmax + (vmin, vmax) = (int(vmin), int(vmax + 1)) + span = vmax - vmin + 1 + + info = np.zeros( + span, dtype=[("val", int), ("maj", bool), ("min", bool), ("fmt", "|S8")] + ) + info["val"] = np.arange(vmin, vmax + 1) + info["fmt"] = "" + dates_ = info["val"] + + (min_anndef, maj_anndef) = _get_default_annual_spacing(span) + major_idx = dates_ % maj_anndef == 0 + minor_idx = dates_ % min_anndef == 0 + info["maj"][major_idx] = True + info["min"][minor_idx] = True + info["fmt"][major_idx] = "%Y" + + return info + + +def get_finder(freq: BaseOffset): + # error: "BaseOffset" has no attribute "_period_dtype_code" + dtype_code = freq._period_dtype_code # type: ignore[attr-defined] + fgroup = FreqGroup.from_period_dtype_code(dtype_code) + + if fgroup == FreqGroup.FR_ANN: + return _annual_finder + elif fgroup == FreqGroup.FR_QTR: + return _quarterly_finder + elif fgroup == FreqGroup.FR_MTH: + return _monthly_finder + elif (dtype_code >= FreqGroup.FR_BUS.value) or fgroup == FreqGroup.FR_WK: + return _daily_finder + else: # pragma: no cover + raise NotImplementedError(f"Unsupported frequency: {dtype_code}") + + +class TimeSeries_DateLocator(Locator): + """ + Locates the ticks along an axis controlled by a :class:`Series`. + + Parameters + ---------- + freq : BaseOffset + Valid frequency specifier. + minor_locator : {False, True}, optional + Whether the locator is for minor ticks (True) or not. + dynamic_mode : {True, False}, optional + Whether the locator should work in dynamic mode. + base : {int}, optional + quarter : {int}, optional + month : {int}, optional + day : {int}, optional + """ + + axis: Axis + + def __init__( + self, + freq: BaseOffset, + minor_locator: bool = False, + dynamic_mode: bool = True, + base: int = 1, + quarter: int = 1, + month: int = 1, + day: int = 1, + plot_obj=None, + ) -> None: + freq = to_offset(freq, is_period=True) + self.freq = freq + self.base = base + (self.quarter, self.month, self.day) = (quarter, month, day) + self.isminor = minor_locator + self.isdynamic = dynamic_mode + self.offset = 0 + self.plot_obj = plot_obj + self.finder = get_finder(freq) + + def _get_default_locs(self, vmin, vmax): + """Returns the default locations of ticks.""" + locator = self.finder(vmin, vmax, self.freq) + + if self.isminor: + return np.compress(locator["min"], locator["val"]) + return np.compress(locator["maj"], locator["val"]) + + def __call__(self): + """Return the locations of the ticks.""" + # axis calls Locator.set_axis inside set_m_formatter + + vi = tuple(self.axis.get_view_interval()) + vmin, vmax = vi + if vmax < vmin: + vmin, vmax = vmax, vmin + if self.isdynamic: + locs = self._get_default_locs(vmin, vmax) + else: # pragma: no cover + base = self.base + (d, m) = divmod(vmin, base) + vmin = (d + 1) * base + # error: No overload variant of "range" matches argument types "float", + # "float", "int" + locs = list(range(vmin, vmax + 1, base)) # type: ignore[call-overload] + return locs + + def autoscale(self): + """ + Sets the view limits to the nearest multiples of base that contain the + data. + """ + # requires matplotlib >= 0.98.0 + (vmin, vmax) = self.axis.get_data_interval() + + locs = self._get_default_locs(vmin, vmax) + (vmin, vmax) = locs[[0, -1]] + if vmin == vmax: + vmin -= 1 + vmax += 1 + return nonsingular(vmin, vmax) + + +# ------------------------------------------------------------------------- +# --- Formatter --- +# ------------------------------------------------------------------------- + + +class TimeSeries_DateFormatter(Formatter): + """ + Formats the ticks along an axis controlled by a :class:`PeriodIndex`. + + Parameters + ---------- + freq : BaseOffset + Valid frequency specifier. + minor_locator : bool, default False + Whether the current formatter should apply to minor ticks (True) or + major ticks (False). + dynamic_mode : bool, default True + Whether the formatter works in dynamic mode or not. + """ + + axis: Axis + + def __init__( + self, + freq: BaseOffset, + minor_locator: bool = False, + dynamic_mode: bool = True, + plot_obj=None, + ) -> None: + freq = to_offset(freq, is_period=True) + self.format = None + self.freq = freq + self.locs: list[Any] = [] # unused, for matplotlib compat + self.formatdict: dict[Any, Any] | None = None + self.isminor = minor_locator + self.isdynamic = dynamic_mode + self.offset = 0 + self.plot_obj = plot_obj + self.finder = get_finder(freq) + + def _set_default_format(self, vmin, vmax): + """Returns the default ticks spacing.""" + info = self.finder(vmin, vmax, self.freq) + + if self.isminor: + format = np.compress(info["min"] & np.logical_not(info["maj"]), info) + else: + format = np.compress(info["maj"], info) + self.formatdict = {x: f for (x, _, _, f) in format} + return self.formatdict + + def set_locs(self, locs) -> None: + """Sets the locations of the ticks""" + # don't actually use the locs. This is just needed to work with + # matplotlib. Force to use vmin, vmax + + self.locs = locs + + (vmin, vmax) = tuple(self.axis.get_view_interval()) + if vmax < vmin: + (vmin, vmax) = (vmax, vmin) + self._set_default_format(vmin, vmax) + + def __call__(self, x, pos: int | None = 0) -> str: + if self.formatdict is None: + return "" + else: + fmt = self.formatdict.pop(x, "") + if isinstance(fmt, np.bytes_): + fmt = fmt.decode("utf-8") + with warnings.catch_warnings(): + warnings.filterwarnings( + "ignore", + "Period with BDay freq is deprecated", + category=FutureWarning, + ) + period = Period(ordinal=int(x), freq=self.freq) + assert isinstance(period, Period) + return period.strftime(fmt) + + +class TimeSeries_TimedeltaFormatter(Formatter): + """ + Formats the ticks along an axis controlled by a :class:`TimedeltaIndex`. + """ + + axis: Axis + + @staticmethod + def format_timedelta_ticks(x, pos, n_decimals: int) -> str: + """ + Convert seconds to 'D days HH:MM:SS.F' + """ + s, ns = divmod(x, 10**9) # TODO(non-nano): this looks like it assumes ns + m, s = divmod(s, 60) + h, m = divmod(m, 60) + d, h = divmod(h, 24) + decimals = int(ns * 10 ** (n_decimals - 9)) + s = f"{int(h):02d}:{int(m):02d}:{int(s):02d}" + if n_decimals > 0: + s += f".{decimals:0{n_decimals}d}" + if d != 0: + s = f"{int(d):d} days {s}" + return s + + def __call__(self, x, pos: int | None = 0) -> str: + (vmin, vmax) = tuple(self.axis.get_view_interval()) + n_decimals = min(int(np.ceil(np.log10(100 * 10**9 / abs(vmax - vmin)))), 9) + return self.format_timedelta_ticks(x, pos, n_decimals) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/core.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/core.py new file mode 100644 index 0000000000000000000000000000000000000000..3a1e589c2279bdadb736ce85312bc2c84f5793eb --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/core.py @@ -0,0 +1,2125 @@ +from __future__ import annotations + +from abc import ( + ABC, + abstractmethod, +) +from collections.abc import ( + Hashable, + Iterable, + Iterator, + Sequence, +) +from typing import ( + TYPE_CHECKING, + Any, + Literal, + cast, + final, +) +import warnings + +import matplotlib as mpl +import numpy as np + +from pandas._libs import lib +from pandas.errors import AbstractMethodError +from pandas.util._decorators import cache_readonly +from pandas.util._exceptions import find_stack_level + +from pandas.core.dtypes.common import ( + is_any_real_numeric_dtype, + is_bool, + is_float, + is_float_dtype, + is_hashable, + is_integer, + is_integer_dtype, + is_iterator, + is_list_like, + is_number, + is_numeric_dtype, +) +from pandas.core.dtypes.dtypes import ( + CategoricalDtype, + ExtensionDtype, +) +from pandas.core.dtypes.generic import ( + ABCDataFrame, + ABCDatetimeIndex, + ABCIndex, + ABCMultiIndex, + ABCPeriodIndex, + ABCSeries, +) +from pandas.core.dtypes.missing import isna + +import pandas.core.common as com +from pandas.core.frame import DataFrame +from pandas.util.version import Version + +from pandas.io.formats.printing import pprint_thing +from pandas.plotting._matplotlib import tools +from pandas.plotting._matplotlib.converter import register_pandas_matplotlib_converters +from pandas.plotting._matplotlib.groupby import reconstruct_data_with_by +from pandas.plotting._matplotlib.misc import unpack_single_str_list +from pandas.plotting._matplotlib.style import get_standard_colors +from pandas.plotting._matplotlib.timeseries import ( + decorate_axes, + format_dateaxis, + maybe_convert_index, + maybe_resample, + use_dynamic_x, +) +from pandas.plotting._matplotlib.tools import ( + create_subplots, + flatten_axes, + format_date_labels, + get_all_lines, + get_xlim, + handle_shared_axes, +) + +if TYPE_CHECKING: + from matplotlib.artist import Artist + from matplotlib.axes import Axes + from matplotlib.axis import Axis + from matplotlib.figure import Figure + + from pandas._typing import ( + IndexLabel, + NDFrameT, + PlottingOrientation, + npt, + ) + + from pandas import Series + + +def _color_in_style(style: str) -> bool: + """ + Check if there is a color letter in the style string. + """ + from matplotlib.colors import BASE_COLORS + + return not set(BASE_COLORS).isdisjoint(style) + + +class MPLPlot(ABC): + """ + Base class for assembling a pandas plot using matplotlib + + Parameters + ---------- + data : + + """ + + @property + @abstractmethod + def _kind(self) -> str: + """Specify kind str. Must be overridden in child class""" + raise NotImplementedError + + _layout_type = "vertical" + _default_rot = 0 + + @property + def orientation(self) -> str | None: + return None + + data: DataFrame + + def __init__( + self, + data, + kind=None, + by: IndexLabel | None = None, + subplots: bool | Sequence[Sequence[str]] = False, + sharex: bool | None = None, + sharey: bool = False, + use_index: bool = True, + figsize: tuple[float, float] | None = None, + grid=None, + legend: bool | str = True, + rot=None, + ax=None, + fig=None, + title=None, + xlim=None, + ylim=None, + xticks=None, + yticks=None, + xlabel: Hashable | None = None, + ylabel: Hashable | None = None, + fontsize: int | None = None, + secondary_y: bool | tuple | list | np.ndarray = False, + colormap=None, + table: bool = False, + layout=None, + include_bool: bool = False, + column: IndexLabel | None = None, + *, + logx: bool | None | Literal["sym"] = False, + logy: bool | None | Literal["sym"] = False, + loglog: bool | None | Literal["sym"] = False, + mark_right: bool = True, + stacked: bool = False, + label: Hashable | None = None, + style=None, + **kwds, + ) -> None: + import matplotlib.pyplot as plt + + # if users assign an empty list or tuple, raise `ValueError` + # similar to current `df.box` and `df.hist` APIs. + if by in ([], ()): + raise ValueError("No group keys passed!") + self.by = com.maybe_make_list(by) + + # Assign the rest of columns into self.columns if by is explicitly defined + # while column is not, only need `columns` in hist/box plot when it's DF + # TODO: Might deprecate `column` argument in future PR (#28373) + if isinstance(data, DataFrame): + if column: + self.columns = com.maybe_make_list(column) + elif self.by is None: + self.columns = [ + col for col in data.columns if is_numeric_dtype(data[col]) + ] + else: + self.columns = [ + col + for col in data.columns + if col not in self.by and is_numeric_dtype(data[col]) + ] + + # For `hist` plot, need to get grouped original data before `self.data` is + # updated later + if self.by is not None and self._kind == "hist": + self._grouped = data.groupby(unpack_single_str_list(self.by)) + + self.kind = kind + + self.subplots = type(self)._validate_subplots_kwarg( + subplots, data, kind=self._kind + ) + + self.sharex = type(self)._validate_sharex(sharex, ax, by) + self.sharey = sharey + self.figsize = figsize + self.layout = layout + + self.xticks = xticks + self.yticks = yticks + self.xlim = xlim + self.ylim = ylim + self.title = title + self.use_index = use_index + self.xlabel = xlabel + self.ylabel = ylabel + + self.fontsize = fontsize + + if rot is not None: + self.rot = rot + # need to know for format_date_labels since it's rotated to 30 by + # default + self._rot_set = True + else: + self._rot_set = False + self.rot = self._default_rot + + if grid is None: + grid = False if secondary_y else plt.rcParams["axes.grid"] + + self.grid = grid + self.legend = legend + self.legend_handles: list[Artist] = [] + self.legend_labels: list[Hashable] = [] + + self.logx = type(self)._validate_log_kwd("logx", logx) + self.logy = type(self)._validate_log_kwd("logy", logy) + self.loglog = type(self)._validate_log_kwd("loglog", loglog) + self.label = label + self.style = style + self.mark_right = mark_right + self.stacked = stacked + + # ax may be an Axes object or (if self.subplots) an ndarray of + # Axes objects + self.ax = ax + # TODO: deprecate fig keyword as it is ignored, not passed in tests + # as of 2023-11-05 + + # parse errorbar input if given + xerr = kwds.pop("xerr", None) + yerr = kwds.pop("yerr", None) + nseries = self._get_nseries(data) + xerr, data = type(self)._parse_errorbars("xerr", xerr, data, nseries) + yerr, data = type(self)._parse_errorbars("yerr", yerr, data, nseries) + self.errors = {"xerr": xerr, "yerr": yerr} + self.data = data + + if not isinstance(secondary_y, (bool, tuple, list, np.ndarray, ABCIndex)): + secondary_y = [secondary_y] + self.secondary_y = secondary_y + + # ugly TypeError if user passes matplotlib's `cmap` name. + # Probably better to accept either. + if "cmap" in kwds and colormap: + raise TypeError("Only specify one of `cmap` and `colormap`.") + if "cmap" in kwds: + self.colormap = kwds.pop("cmap") + else: + self.colormap = colormap + + self.table = table + self.include_bool = include_bool + + self.kwds = kwds + + color = kwds.pop("color", lib.no_default) + self.color = self._validate_color_args(color, self.colormap) + assert "color" not in self.kwds + + self.data = self._ensure_frame(self.data) + + @final + @staticmethod + def _validate_sharex(sharex: bool | None, ax, by) -> bool: + if sharex is None: + # if by is defined, subplots are used and sharex should be False + if ax is None and by is None: # pylint: disable=simplifiable-if-statement + sharex = True + else: + # if we get an axis, the users should do the visibility + # setting... + sharex = False + elif not is_bool(sharex): + raise TypeError("sharex must be a bool or None") + return bool(sharex) + + @classmethod + def _validate_log_kwd( + cls, + kwd: str, + value: bool | None | Literal["sym"], + ) -> bool | None | Literal["sym"]: + if ( + value is None + or isinstance(value, bool) + or (isinstance(value, str) and value == "sym") + ): + return value + raise ValueError( + f"keyword '{kwd}' should be bool, None, or 'sym', not '{value}'" + ) + + @final + @staticmethod + def _validate_subplots_kwarg( + subplots: bool | Sequence[Sequence[str]], data: Series | DataFrame, kind: str + ) -> bool | list[tuple[int, ...]]: + """ + Validate the subplots parameter + + - check type and content + - check for duplicate columns + - check for invalid column names + - convert column names into indices + - add missing columns in a group of their own + See comments in code below for more details. + + Parameters + ---------- + subplots : subplots parameters as passed to PlotAccessor + + Returns + ------- + validated subplots : a bool or a list of tuples of column indices. Columns + in the same tuple will be grouped together in the resulting plot. + """ + + if isinstance(subplots, bool): + return subplots + elif not isinstance(subplots, Iterable): + raise ValueError("subplots should be a bool or an iterable") + + supported_kinds = ( + "line", + "bar", + "barh", + "hist", + "kde", + "density", + "area", + "pie", + ) + if kind not in supported_kinds: + raise ValueError( + "When subplots is an iterable, kind must be " + f"one of {', '.join(supported_kinds)}. Got {kind}." + ) + + if isinstance(data, ABCSeries): + raise NotImplementedError( + "An iterable subplots for a Series is not supported." + ) + + columns = data.columns + if isinstance(columns, ABCMultiIndex): + raise NotImplementedError( + "An iterable subplots for a DataFrame with a MultiIndex column " + "is not supported." + ) + + if columns.nunique() != len(columns): + raise NotImplementedError( + "An iterable subplots for a DataFrame with non-unique column " + "labels is not supported." + ) + + # subplots is a list of tuples where each tuple is a group of + # columns to be grouped together (one ax per group). + # we consolidate the subplots list such that: + # - the tuples contain indices instead of column names + # - the columns that aren't yet in the list are added in a group + # of their own. + # For example with columns from a to g, and + # subplots = [(a, c), (b, f, e)], + # we end up with [(ai, ci), (bi, fi, ei), (di,), (gi,)] + # This way, we can handle self.subplots in a homogeneous manner + # later. + # TODO: also accept indices instead of just names? + + out = [] + seen_columns: set[Hashable] = set() + for group in subplots: + if not is_list_like(group): + raise ValueError( + "When subplots is an iterable, each entry " + "should be a list/tuple of column names." + ) + idx_locs = columns.get_indexer_for(group) + if (idx_locs == -1).any(): + bad_labels = np.extract(idx_locs == -1, group) + raise ValueError( + f"Column label(s) {list(bad_labels)} not found in the DataFrame." + ) + unique_columns = set(group) + duplicates = seen_columns.intersection(unique_columns) + if duplicates: + raise ValueError( + "Each column should be in only one subplot. " + f"Columns {duplicates} were found in multiple subplots." + ) + seen_columns = seen_columns.union(unique_columns) + out.append(tuple(idx_locs)) + + unseen_columns = columns.difference(seen_columns) + for column in unseen_columns: + idx_loc = columns.get_loc(column) + out.append((idx_loc,)) + return out + + def _validate_color_args(self, color, colormap): + if color is lib.no_default: + # It was not provided by the user + if "colors" in self.kwds and colormap is not None: + warnings.warn( + "'color' and 'colormap' cannot be used simultaneously. " + "Using 'color'", + stacklevel=find_stack_level(), + ) + return None + if self.nseries == 1 and color is not None and not is_list_like(color): + # support series.plot(color='green') + color = [color] + + if isinstance(color, tuple) and self.nseries == 1 and len(color) in (3, 4): + # support RGB and RGBA tuples in series plot + color = [color] + + if colormap is not None: + warnings.warn( + "'color' and 'colormap' cannot be used simultaneously. Using 'color'", + stacklevel=find_stack_level(), + ) + + if self.style is not None: + if is_list_like(self.style): + styles = self.style + else: + styles = [self.style] + # need only a single match + for s in styles: + if _color_in_style(s): + raise ValueError( + "Cannot pass 'style' string with a color symbol and " + "'color' keyword argument. Please use one or the " + "other or pass 'style' without a color symbol" + ) + return color + + @final + @staticmethod + def _iter_data( + data: DataFrame | dict[Hashable, Series | DataFrame] + ) -> Iterator[tuple[Hashable, np.ndarray]]: + for col, values in data.items(): + # This was originally written to use values.values before EAs + # were implemented; adding np.asarray(...) to keep consistent + # typing. + yield col, np.asarray(values.values) + + def _get_nseries(self, data: Series | DataFrame) -> int: + # When `by` is explicitly assigned, grouped data size will be defined, and + # this will determine number of subplots to have, aka `self.nseries` + if data.ndim == 1: + return 1 + elif self.by is not None and self._kind == "hist": + return len(self._grouped) + elif self.by is not None and self._kind == "box": + return len(self.columns) + else: + return data.shape[1] + + @final + @property + def nseries(self) -> int: + return self._get_nseries(self.data) + + @final + def draw(self) -> None: + self.plt.draw_if_interactive() + + @final + def generate(self) -> None: + self._compute_plot_data() + fig = self.fig + self._make_plot(fig) + self._add_table() + self._make_legend() + self._adorn_subplots(fig) + + for ax in self.axes: + self._post_plot_logic_common(ax) + self._post_plot_logic(ax, self.data) + + @final + @staticmethod + def _has_plotted_object(ax: Axes) -> bool: + """check whether ax has data""" + return len(ax.lines) != 0 or len(ax.artists) != 0 or len(ax.containers) != 0 + + @final + def _maybe_right_yaxis(self, ax: Axes, axes_num: int) -> Axes: + if not self.on_right(axes_num): + # secondary axes may be passed via ax kw + return self._get_ax_layer(ax) + + if hasattr(ax, "right_ax"): + # if it has right_ax property, ``ax`` must be left axes + return ax.right_ax + elif hasattr(ax, "left_ax"): + # if it has left_ax property, ``ax`` must be right axes + return ax + else: + # otherwise, create twin axes + orig_ax, new_ax = ax, ax.twinx() + # TODO: use Matplotlib public API when available + new_ax._get_lines = orig_ax._get_lines # type: ignore[attr-defined] + # TODO #54485 + new_ax._get_patches_for_fill = ( # type: ignore[attr-defined] + orig_ax._get_patches_for_fill # type: ignore[attr-defined] + ) + # TODO #54485 + orig_ax.right_ax, new_ax.left_ax = ( # type: ignore[attr-defined] + new_ax, + orig_ax, + ) + + if not self._has_plotted_object(orig_ax): # no data on left y + orig_ax.get_yaxis().set_visible(False) + + if self.logy is True or self.loglog is True: + new_ax.set_yscale("log") + elif self.logy == "sym" or self.loglog == "sym": + new_ax.set_yscale("symlog") + return new_ax + + @final + @cache_readonly + def fig(self) -> Figure: + return self._axes_and_fig[1] + + @final + @cache_readonly + # TODO: can we annotate this as both a Sequence[Axes] and ndarray[object]? + def axes(self) -> Sequence[Axes]: + return self._axes_and_fig[0] + + @final + @cache_readonly + def _axes_and_fig(self) -> tuple[Sequence[Axes], Figure]: + if self.subplots: + naxes = ( + self.nseries if isinstance(self.subplots, bool) else len(self.subplots) + ) + fig, axes = create_subplots( + naxes=naxes, + sharex=self.sharex, + sharey=self.sharey, + figsize=self.figsize, + ax=self.ax, + layout=self.layout, + layout_type=self._layout_type, + ) + elif self.ax is None: + fig = self.plt.figure(figsize=self.figsize) + axes = fig.add_subplot(111) + else: + fig = self.ax.get_figure() + if self.figsize is not None: + fig.set_size_inches(self.figsize) + axes = self.ax + + axes = flatten_axes(axes) + + if self.logx is True or self.loglog is True: + [a.set_xscale("log") for a in axes] + elif self.logx == "sym" or self.loglog == "sym": + [a.set_xscale("symlog") for a in axes] + + if self.logy is True or self.loglog is True: + [a.set_yscale("log") for a in axes] + elif self.logy == "sym" or self.loglog == "sym": + [a.set_yscale("symlog") for a in axes] + + axes_seq = cast(Sequence["Axes"], axes) + return axes_seq, fig + + @property + def result(self): + """ + Return result axes + """ + if self.subplots: + if self.layout is not None and not is_list_like(self.ax): + # error: "Sequence[Any]" has no attribute "reshape" + return self.axes.reshape(*self.layout) # type: ignore[attr-defined] + else: + return self.axes + else: + sec_true = isinstance(self.secondary_y, bool) and self.secondary_y + # error: Argument 1 to "len" has incompatible type "Union[bool, + # Tuple[Any, ...], List[Any], ndarray[Any, Any]]"; expected "Sized" + all_sec = ( + is_list_like(self.secondary_y) + and len(self.secondary_y) == self.nseries # type: ignore[arg-type] + ) + if sec_true or all_sec: + # if all data is plotted on secondary, return right axes + return self._get_ax_layer(self.axes[0], primary=False) + else: + return self.axes[0] + + @final + @staticmethod + def _convert_to_ndarray(data): + # GH31357: categorical columns are processed separately + if isinstance(data.dtype, CategoricalDtype): + return data + + # GH32073: cast to float if values contain nulled integers + if (is_integer_dtype(data.dtype) or is_float_dtype(data.dtype)) and isinstance( + data.dtype, ExtensionDtype + ): + return data.to_numpy(dtype="float", na_value=np.nan) + + # GH25587: cast ExtensionArray of pandas (IntegerArray, etc.) to + # np.ndarray before plot. + if len(data) > 0: + return np.asarray(data) + + return data + + @final + def _ensure_frame(self, data) -> DataFrame: + if isinstance(data, ABCSeries): + label = self.label + if label is None and data.name is None: + label = "" + if label is None: + # We'll end up with columns of [0] instead of [None] + data = data.to_frame() + else: + data = data.to_frame(name=label) + elif self._kind in ("hist", "box"): + cols = self.columns if self.by is None else self.columns + self.by + data = data.loc[:, cols] + return data + + @final + def _compute_plot_data(self) -> None: + data = self.data + + # GH15079 reconstruct data if by is defined + if self.by is not None: + self.subplots = True + data = reconstruct_data_with_by(self.data, by=self.by, cols=self.columns) + + # GH16953, infer_objects is needed as fallback, for ``Series`` + # with ``dtype == object`` + data = data.infer_objects(copy=False) + include_type = [np.number, "datetime", "datetimetz", "timedelta"] + + # GH23719, allow plotting boolean + if self.include_bool is True: + include_type.append(np.bool_) + + # GH22799, exclude datetime-like type for boxplot + exclude_type = None + if self._kind == "box": + # TODO: change after solving issue 27881 + include_type = [np.number] + exclude_type = ["timedelta"] + + # GH 18755, include object and category type for scatter plot + if self._kind == "scatter": + include_type.extend(["object", "category", "string"]) + + numeric_data = data.select_dtypes(include=include_type, exclude=exclude_type) + + is_empty = numeric_data.shape[-1] == 0 + # no non-numeric frames or series allowed + if is_empty: + raise TypeError("no numeric data to plot") + + self.data = numeric_data.apply(type(self)._convert_to_ndarray) + + def _make_plot(self, fig: Figure) -> None: + raise AbstractMethodError(self) + + @final + def _add_table(self) -> None: + if self.table is False: + return + elif self.table is True: + data = self.data.transpose() + else: + data = self.table + ax = self._get_ax(0) + tools.table(ax, data) + + @final + def _post_plot_logic_common(self, ax: Axes) -> None: + """Common post process for each axes""" + if self.orientation == "vertical" or self.orientation is None: + type(self)._apply_axis_properties( + ax.xaxis, rot=self.rot, fontsize=self.fontsize + ) + type(self)._apply_axis_properties(ax.yaxis, fontsize=self.fontsize) + + if hasattr(ax, "right_ax"): + type(self)._apply_axis_properties( + ax.right_ax.yaxis, fontsize=self.fontsize + ) + + elif self.orientation == "horizontal": + type(self)._apply_axis_properties( + ax.yaxis, rot=self.rot, fontsize=self.fontsize + ) + type(self)._apply_axis_properties(ax.xaxis, fontsize=self.fontsize) + + if hasattr(ax, "right_ax"): + type(self)._apply_axis_properties( + ax.right_ax.yaxis, fontsize=self.fontsize + ) + else: # pragma no cover + raise ValueError + + @abstractmethod + def _post_plot_logic(self, ax: Axes, data) -> None: + """Post process for each axes. Overridden in child classes""" + + @final + def _adorn_subplots(self, fig: Figure) -> None: + """Common post process unrelated to data""" + if len(self.axes) > 0: + all_axes = self._get_subplots(fig) + nrows, ncols = self._get_axes_layout(fig) + handle_shared_axes( + axarr=all_axes, + nplots=len(all_axes), + naxes=nrows * ncols, + nrows=nrows, + ncols=ncols, + sharex=self.sharex, + sharey=self.sharey, + ) + + for ax in self.axes: + ax = getattr(ax, "right_ax", ax) + if self.yticks is not None: + ax.set_yticks(self.yticks) + + if self.xticks is not None: + ax.set_xticks(self.xticks) + + if self.ylim is not None: + ax.set_ylim(self.ylim) + + if self.xlim is not None: + ax.set_xlim(self.xlim) + + # GH9093, currently Pandas does not show ylabel, so if users provide + # ylabel will set it as ylabel in the plot. + if self.ylabel is not None: + ax.set_ylabel(pprint_thing(self.ylabel)) + + ax.grid(self.grid) + + if self.title: + if self.subplots: + if is_list_like(self.title): + if len(self.title) != self.nseries: + raise ValueError( + "The length of `title` must equal the number " + "of columns if using `title` of type `list` " + "and `subplots=True`.\n" + f"length of title = {len(self.title)}\n" + f"number of columns = {self.nseries}" + ) + + for ax, title in zip(self.axes, self.title): + ax.set_title(title) + else: + fig.suptitle(self.title) + else: + if is_list_like(self.title): + msg = ( + "Using `title` of type `list` is not supported " + "unless `subplots=True` is passed" + ) + raise ValueError(msg) + self.axes[0].set_title(self.title) + + @final + @staticmethod + def _apply_axis_properties( + axis: Axis, rot=None, fontsize: int | None = None + ) -> None: + """ + Tick creation within matplotlib is reasonably expensive and is + internally deferred until accessed as Ticks are created/destroyed + multiple times per draw. It's therefore beneficial for us to avoid + accessing unless we will act on the Tick. + """ + if rot is not None or fontsize is not None: + # rot=0 is a valid setting, hence the explicit None check + labels = axis.get_majorticklabels() + axis.get_minorticklabels() + for label in labels: + if rot is not None: + label.set_rotation(rot) + if fontsize is not None: + label.set_fontsize(fontsize) + + @final + @property + def legend_title(self) -> str | None: + if not isinstance(self.data.columns, ABCMultiIndex): + name = self.data.columns.name + if name is not None: + name = pprint_thing(name) + return name + else: + stringified = map(pprint_thing, self.data.columns.names) + return ",".join(stringified) + + @final + def _mark_right_label(self, label: str, index: int) -> str: + """ + Append ``(right)`` to the label of a line if it's plotted on the right axis. + + Note that ``(right)`` is only appended when ``subplots=False``. + """ + if not self.subplots and self.mark_right and self.on_right(index): + label += " (right)" + return label + + @final + def _append_legend_handles_labels(self, handle: Artist, label: str) -> None: + """ + Append current handle and label to ``legend_handles`` and ``legend_labels``. + + These will be used to make the legend. + """ + self.legend_handles.append(handle) + self.legend_labels.append(label) + + def _make_legend(self) -> None: + ax, leg = self._get_ax_legend(self.axes[0]) + + handles = [] + labels = [] + title = "" + + if not self.subplots: + if leg is not None: + title = leg.get_title().get_text() + # Replace leg.legend_handles because it misses marker info + if Version(mpl.__version__) < Version("3.7"): + handles = leg.legendHandles + else: + handles = leg.legend_handles + labels = [x.get_text() for x in leg.get_texts()] + + if self.legend: + if self.legend == "reverse": + handles += reversed(self.legend_handles) + labels += reversed(self.legend_labels) + else: + handles += self.legend_handles + labels += self.legend_labels + + if self.legend_title is not None: + title = self.legend_title + + if len(handles) > 0: + ax.legend(handles, labels, loc="best", title=title) + + elif self.subplots and self.legend: + for ax in self.axes: + if ax.get_visible(): + with warnings.catch_warnings(): + warnings.filterwarnings( + "ignore", + "No artists with labels found to put in legend.", + UserWarning, + ) + ax.legend(loc="best") + + @final + @staticmethod + def _get_ax_legend(ax: Axes): + """ + Take in axes and return ax and legend under different scenarios + """ + leg = ax.get_legend() + + other_ax = getattr(ax, "left_ax", None) or getattr(ax, "right_ax", None) + other_leg = None + if other_ax is not None: + other_leg = other_ax.get_legend() + if leg is None and other_leg is not None: + leg = other_leg + ax = other_ax + return ax, leg + + @final + @cache_readonly + def plt(self): + import matplotlib.pyplot as plt + + return plt + + _need_to_set_index = False + + @final + def _get_xticks(self): + index = self.data.index + is_datetype = index.inferred_type in ("datetime", "date", "datetime64", "time") + + # TODO: be stricter about x? + x: list[int] | np.ndarray + if self.use_index: + if isinstance(index, ABCPeriodIndex): + # test_mixed_freq_irreg_period + x = index.to_timestamp()._mpl_repr() + # TODO: why do we need to do to_timestamp() here but not other + # places where we call mpl_repr? + elif is_any_real_numeric_dtype(index.dtype): + # Matplotlib supports numeric values or datetime objects as + # xaxis values. Taking LBYL approach here, by the time + # matplotlib raises exception when using non numeric/datetime + # values for xaxis, several actions are already taken by plt. + x = index._mpl_repr() + elif isinstance(index, ABCDatetimeIndex) or is_datetype: + x = index._mpl_repr() + else: + self._need_to_set_index = True + x = list(range(len(index))) + else: + x = list(range(len(index))) + + return x + + @classmethod + @register_pandas_matplotlib_converters + def _plot( + cls, ax: Axes, x, y: np.ndarray, style=None, is_errorbar: bool = False, **kwds + ): + mask = isna(y) + if mask.any(): + y = np.ma.array(y) + y = np.ma.masked_where(mask, y) + + if isinstance(x, ABCIndex): + x = x._mpl_repr() + + if is_errorbar: + if "xerr" in kwds: + kwds["xerr"] = np.array(kwds.get("xerr")) + if "yerr" in kwds: + kwds["yerr"] = np.array(kwds.get("yerr")) + return ax.errorbar(x, y, **kwds) + else: + # prevent style kwarg from going to errorbar, where it is unsupported + args = (x, y, style) if style is not None else (x, y) + return ax.plot(*args, **kwds) + + def _get_custom_index_name(self): + """Specify whether xlabel/ylabel should be used to override index name""" + return self.xlabel + + @final + def _get_index_name(self) -> str | None: + if isinstance(self.data.index, ABCMultiIndex): + name = self.data.index.names + if com.any_not_none(*name): + name = ",".join([pprint_thing(x) for x in name]) + else: + name = None + else: + name = self.data.index.name + if name is not None: + name = pprint_thing(name) + + # GH 45145, override the default axis label if one is provided. + index_name = self._get_custom_index_name() + if index_name is not None: + name = pprint_thing(index_name) + + return name + + @final + @classmethod + def _get_ax_layer(cls, ax, primary: bool = True): + """get left (primary) or right (secondary) axes""" + if primary: + return getattr(ax, "left_ax", ax) + else: + return getattr(ax, "right_ax", ax) + + @final + def _col_idx_to_axis_idx(self, col_idx: int) -> int: + """Return the index of the axis where the column at col_idx should be plotted""" + if isinstance(self.subplots, list): + # Subplots is a list: some columns will be grouped together in the same ax + return next( + group_idx + for (group_idx, group) in enumerate(self.subplots) + if col_idx in group + ) + else: + # subplots is True: one ax per column + return col_idx + + @final + def _get_ax(self, i: int): + # get the twinx ax if appropriate + if self.subplots: + i = self._col_idx_to_axis_idx(i) + ax = self.axes[i] + ax = self._maybe_right_yaxis(ax, i) + # error: Unsupported target for indexed assignment ("Sequence[Any]") + self.axes[i] = ax # type: ignore[index] + else: + ax = self.axes[0] + ax = self._maybe_right_yaxis(ax, i) + + ax.get_yaxis().set_visible(True) + return ax + + @final + def on_right(self, i: int): + if isinstance(self.secondary_y, bool): + return self.secondary_y + + if isinstance(self.secondary_y, (tuple, list, np.ndarray, ABCIndex)): + return self.data.columns[i] in self.secondary_y + + @final + def _apply_style_colors( + self, colors, kwds: dict[str, Any], col_num: int, label: str + ): + """ + Manage style and color based on column number and its label. + Returns tuple of appropriate style and kwds which "color" may be added. + """ + style = None + if self.style is not None: + if isinstance(self.style, list): + try: + style = self.style[col_num] + except IndexError: + pass + elif isinstance(self.style, dict): + style = self.style.get(label, style) + else: + style = self.style + + has_color = "color" in kwds or self.colormap is not None + nocolor_style = style is None or not _color_in_style(style) + if (has_color or self.subplots) and nocolor_style: + if isinstance(colors, dict): + kwds["color"] = colors[label] + else: + kwds["color"] = colors[col_num % len(colors)] + return style, kwds + + def _get_colors( + self, + num_colors: int | None = None, + color_kwds: str = "color", + ): + if num_colors is None: + num_colors = self.nseries + if color_kwds == "color": + color = self.color + else: + color = self.kwds.get(color_kwds) + return get_standard_colors( + num_colors=num_colors, + colormap=self.colormap, + color=color, + ) + + # TODO: tighter typing for first return? + @final + @staticmethod + def _parse_errorbars( + label: str, err, data: NDFrameT, nseries: int + ) -> tuple[Any, NDFrameT]: + """ + Look for error keyword arguments and return the actual errorbar data + or return the error DataFrame/dict + + Error bars can be specified in several ways: + Series: the user provides a pandas.Series object of the same + length as the data + ndarray: provides a np.ndarray of the same length as the data + DataFrame/dict: error values are paired with keys matching the + key in the plotted DataFrame + str: the name of the column within the plotted DataFrame + + Asymmetrical error bars are also supported, however raw error values + must be provided in this case. For a ``N`` length :class:`Series`, a + ``2xN`` array should be provided indicating lower and upper (or left + and right) errors. For a ``MxN`` :class:`DataFrame`, asymmetrical errors + should be in a ``Mx2xN`` array. + """ + if err is None: + return None, data + + def match_labels(data, e): + e = e.reindex(data.index) + return e + + # key-matched DataFrame + if isinstance(err, ABCDataFrame): + err = match_labels(data, err) + # key-matched dict + elif isinstance(err, dict): + pass + + # Series of error values + elif isinstance(err, ABCSeries): + # broadcast error series across data + err = match_labels(data, err) + err = np.atleast_2d(err) + err = np.tile(err, (nseries, 1)) + + # errors are a column in the dataframe + elif isinstance(err, str): + evalues = data[err].values + data = data[data.columns.drop(err)] + err = np.atleast_2d(evalues) + err = np.tile(err, (nseries, 1)) + + elif is_list_like(err): + if is_iterator(err): + err = np.atleast_2d(list(err)) + else: + # raw error values + err = np.atleast_2d(err) + + err_shape = err.shape + + # asymmetrical error bars + if isinstance(data, ABCSeries) and err_shape[0] == 2: + err = np.expand_dims(err, 0) + err_shape = err.shape + if err_shape[2] != len(data): + raise ValueError( + "Asymmetrical error bars should be provided " + f"with the shape (2, {len(data)})" + ) + elif isinstance(data, ABCDataFrame) and err.ndim == 3: + if ( + (err_shape[0] != nseries) + or (err_shape[1] != 2) + or (err_shape[2] != len(data)) + ): + raise ValueError( + "Asymmetrical error bars should be provided " + f"with the shape ({nseries}, 2, {len(data)})" + ) + + # broadcast errors to each data series + if len(err) == 1: + err = np.tile(err, (nseries, 1)) + + elif is_number(err): + err = np.tile( + [err], + (nseries, len(data)), + ) + + else: + msg = f"No valid {label} detected" + raise ValueError(msg) + + return err, data + + @final + def _get_errorbars( + self, label=None, index=None, xerr: bool = True, yerr: bool = True + ) -> dict[str, Any]: + errors = {} + + for kw, flag in zip(["xerr", "yerr"], [xerr, yerr]): + if flag: + err = self.errors[kw] + # user provided label-matched dataframe of errors + if isinstance(err, (ABCDataFrame, dict)): + if label is not None and label in err.keys(): + err = err[label] + else: + err = None + elif index is not None and err is not None: + err = err[index] + + if err is not None: + errors[kw] = err + return errors + + @final + def _get_subplots(self, fig: Figure): + if Version(mpl.__version__) < Version("3.8"): + from matplotlib.axes import Subplot as Klass + else: + from matplotlib.axes import Axes as Klass + + return [ + ax + for ax in fig.get_axes() + if (isinstance(ax, Klass) and ax.get_subplotspec() is not None) + ] + + @final + def _get_axes_layout(self, fig: Figure) -> tuple[int, int]: + axes = self._get_subplots(fig) + x_set = set() + y_set = set() + for ax in axes: + # check axes coordinates to estimate layout + points = ax.get_position().get_points() + x_set.add(points[0][0]) + y_set.add(points[0][1]) + return (len(y_set), len(x_set)) + + +class PlanePlot(MPLPlot, ABC): + """ + Abstract class for plotting on plane, currently scatter and hexbin. + """ + + _layout_type = "single" + + def __init__(self, data, x, y, **kwargs) -> None: + MPLPlot.__init__(self, data, **kwargs) + if x is None or y is None: + raise ValueError(self._kind + " requires an x and y column") + if is_integer(x) and not self.data.columns._holds_integer(): + x = self.data.columns[x] + if is_integer(y) and not self.data.columns._holds_integer(): + y = self.data.columns[y] + + self.x = x + self.y = y + + @final + def _get_nseries(self, data: Series | DataFrame) -> int: + return 1 + + @final + def _post_plot_logic(self, ax: Axes, data) -> None: + x, y = self.x, self.y + xlabel = self.xlabel if self.xlabel is not None else pprint_thing(x) + ylabel = self.ylabel if self.ylabel is not None else pprint_thing(y) + # error: Argument 1 to "set_xlabel" of "_AxesBase" has incompatible + # type "Hashable"; expected "str" + ax.set_xlabel(xlabel) # type: ignore[arg-type] + ax.set_ylabel(ylabel) # type: ignore[arg-type] + + @final + def _plot_colorbar(self, ax: Axes, *, fig: Figure, **kwds): + # Addresses issues #10611 and #10678: + # When plotting scatterplots and hexbinplots in IPython + # inline backend the colorbar axis height tends not to + # exactly match the parent axis height. + # The difference is due to small fractional differences + # in floating points with similar representation. + # To deal with this, this method forces the colorbar + # height to take the height of the parent axes. + # For a more detailed description of the issue + # see the following link: + # https://github.com/ipython/ipython/issues/11215 + + # GH33389, if ax is used multiple times, we should always + # use the last one which contains the latest information + # about the ax + img = ax.collections[-1] + return fig.colorbar(img, ax=ax, **kwds) + + +class ScatterPlot(PlanePlot): + @property + def _kind(self) -> Literal["scatter"]: + return "scatter" + + def __init__( + self, + data, + x, + y, + s=None, + c=None, + *, + colorbar: bool | lib.NoDefault = lib.no_default, + norm=None, + **kwargs, + ) -> None: + if s is None: + # hide the matplotlib default for size, in case we want to change + # the handling of this argument later + s = 20 + elif is_hashable(s) and s in data.columns: + s = data[s] + self.s = s + + self.colorbar = colorbar + self.norm = norm + + super().__init__(data, x, y, **kwargs) + if is_integer(c) and not self.data.columns._holds_integer(): + c = self.data.columns[c] + self.c = c + + def _make_plot(self, fig: Figure) -> None: + x, y, c, data = self.x, self.y, self.c, self.data + ax = self.axes[0] + + c_is_column = is_hashable(c) and c in self.data.columns + + color_by_categorical = c_is_column and isinstance( + self.data[c].dtype, CategoricalDtype + ) + + color = self.color + c_values = self._get_c_values(color, color_by_categorical, c_is_column) + norm, cmap = self._get_norm_and_cmap(c_values, color_by_categorical) + cb = self._get_colorbar(c_values, c_is_column) + + if self.legend: + label = self.label + else: + label = None + scatter = ax.scatter( + data[x].values, + data[y].values, + c=c_values, + label=label, + cmap=cmap, + norm=norm, + s=self.s, + **self.kwds, + ) + if cb: + cbar_label = c if c_is_column else "" + cbar = self._plot_colorbar(ax, fig=fig, label=cbar_label) + if color_by_categorical: + n_cats = len(self.data[c].cat.categories) + cbar.set_ticks(np.linspace(0.5, n_cats - 0.5, n_cats)) + cbar.ax.set_yticklabels(self.data[c].cat.categories) + + if label is not None: + self._append_legend_handles_labels( + # error: Argument 2 to "_append_legend_handles_labels" of + # "MPLPlot" has incompatible type "Hashable"; expected "str" + scatter, + label, # type: ignore[arg-type] + ) + + errors_x = self._get_errorbars(label=x, index=0, yerr=False) + errors_y = self._get_errorbars(label=y, index=0, xerr=False) + if len(errors_x) > 0 or len(errors_y) > 0: + err_kwds = dict(errors_x, **errors_y) + err_kwds["ecolor"] = scatter.get_facecolor()[0] + ax.errorbar(data[x].values, data[y].values, linestyle="none", **err_kwds) + + def _get_c_values(self, color, color_by_categorical: bool, c_is_column: bool): + c = self.c + if c is not None and color is not None: + raise TypeError("Specify exactly one of `c` and `color`") + if c is None and color is None: + c_values = self.plt.rcParams["patch.facecolor"] + elif color is not None: + c_values = color + elif color_by_categorical: + c_values = self.data[c].cat.codes + elif c_is_column: + c_values = self.data[c].values + else: + c_values = c + return c_values + + def _get_norm_and_cmap(self, c_values, color_by_categorical: bool): + c = self.c + if self.colormap is not None: + cmap = mpl.colormaps.get_cmap(self.colormap) + # cmap is only used if c_values are integers, otherwise UserWarning. + # GH-53908: additionally call isinstance() because is_integer_dtype + # returns True for "b" (meaning "blue" and not int8 in this context) + elif not isinstance(c_values, str) and is_integer_dtype(c_values): + # pandas uses colormap, matplotlib uses cmap. + cmap = mpl.colormaps["Greys"] + else: + cmap = None + + if color_by_categorical and cmap is not None: + from matplotlib import colors + + n_cats = len(self.data[c].cat.categories) + cmap = colors.ListedColormap([cmap(i) for i in range(cmap.N)]) + bounds = np.linspace(0, n_cats, n_cats + 1) + norm = colors.BoundaryNorm(bounds, cmap.N) + # TODO: warn that we are ignoring self.norm if user specified it? + # Doesn't happen in any tests 2023-11-09 + else: + norm = self.norm + return norm, cmap + + def _get_colorbar(self, c_values, c_is_column: bool) -> bool: + # plot colorbar if + # 1. colormap is assigned, and + # 2.`c` is a column containing only numeric values + plot_colorbar = self.colormap or c_is_column + cb = self.colorbar + if cb is lib.no_default: + return is_numeric_dtype(c_values) and plot_colorbar + return cb + + +class HexBinPlot(PlanePlot): + @property + def _kind(self) -> Literal["hexbin"]: + return "hexbin" + + def __init__(self, data, x, y, C=None, *, colorbar: bool = True, **kwargs) -> None: + super().__init__(data, x, y, **kwargs) + if is_integer(C) and not self.data.columns._holds_integer(): + C = self.data.columns[C] + self.C = C + + self.colorbar = colorbar + + # Scatter plot allows to plot objects data + if len(self.data[self.x]._get_numeric_data()) == 0: + raise ValueError(self._kind + " requires x column to be numeric") + if len(self.data[self.y]._get_numeric_data()) == 0: + raise ValueError(self._kind + " requires y column to be numeric") + + def _make_plot(self, fig: Figure) -> None: + x, y, data, C = self.x, self.y, self.data, self.C + ax = self.axes[0] + # pandas uses colormap, matplotlib uses cmap. + cmap = self.colormap or "BuGn" + cmap = mpl.colormaps.get_cmap(cmap) + cb = self.colorbar + + if C is None: + c_values = None + else: + c_values = data[C].values + + ax.hexbin(data[x].values, data[y].values, C=c_values, cmap=cmap, **self.kwds) + if cb: + self._plot_colorbar(ax, fig=fig) + + def _make_legend(self) -> None: + pass + + +class LinePlot(MPLPlot): + _default_rot = 0 + + @property + def orientation(self) -> PlottingOrientation: + return "vertical" + + @property + def _kind(self) -> Literal["line", "area", "hist", "kde", "box"]: + return "line" + + def __init__(self, data, **kwargs) -> None: + from pandas.plotting import plot_params + + MPLPlot.__init__(self, data, **kwargs) + if self.stacked: + self.data = self.data.fillna(value=0) + self.x_compat = plot_params["x_compat"] + if "x_compat" in self.kwds: + self.x_compat = bool(self.kwds.pop("x_compat")) + + @final + def _is_ts_plot(self) -> bool: + # this is slightly deceptive + return not self.x_compat and self.use_index and self._use_dynamic_x() + + @final + def _use_dynamic_x(self) -> bool: + return use_dynamic_x(self._get_ax(0), self.data) + + def _make_plot(self, fig: Figure) -> None: + if self._is_ts_plot(): + data = maybe_convert_index(self._get_ax(0), self.data) + + x = data.index # dummy, not used + plotf = self._ts_plot + it = data.items() + else: + x = self._get_xticks() + # error: Incompatible types in assignment (expression has type + # "Callable[[Any, Any, Any, Any, Any, Any, KwArg(Any)], Any]", variable has + # type "Callable[[Any, Any, Any, Any, KwArg(Any)], Any]") + plotf = self._plot # type: ignore[assignment] + # error: Incompatible types in assignment (expression has type + # "Iterator[tuple[Hashable, ndarray[Any, Any]]]", variable has + # type "Iterable[tuple[Hashable, Series]]") + it = self._iter_data(data=self.data) # type: ignore[assignment] + + stacking_id = self._get_stacking_id() + is_errorbar = com.any_not_none(*self.errors.values()) + + colors = self._get_colors() + for i, (label, y) in enumerate(it): + ax = self._get_ax(i) + kwds = self.kwds.copy() + if self.color is not None: + kwds["color"] = self.color + style, kwds = self._apply_style_colors( + colors, + kwds, + i, + # error: Argument 4 to "_apply_style_colors" of "MPLPlot" has + # incompatible type "Hashable"; expected "str" + label, # type: ignore[arg-type] + ) + + errors = self._get_errorbars(label=label, index=i) + kwds = dict(kwds, **errors) + + label = pprint_thing(label) + label = self._mark_right_label(label, index=i) + kwds["label"] = label + + newlines = plotf( + ax, + x, + y, + style=style, + column_num=i, + stacking_id=stacking_id, + is_errorbar=is_errorbar, + **kwds, + ) + self._append_legend_handles_labels(newlines[0], label) + + if self._is_ts_plot(): + # reset of xlim should be used for ts data + # TODO: GH28021, should find a way to change view limit on xaxis + lines = get_all_lines(ax) + left, right = get_xlim(lines) + ax.set_xlim(left, right) + + # error: Signature of "_plot" incompatible with supertype "MPLPlot" + @classmethod + def _plot( # type: ignore[override] + cls, + ax: Axes, + x, + y: np.ndarray, + style=None, + column_num=None, + stacking_id=None, + **kwds, + ): + # column_num is used to get the target column from plotf in line and + # area plots + if column_num == 0: + cls._initialize_stacker(ax, stacking_id, len(y)) + y_values = cls._get_stacked_values(ax, stacking_id, y, kwds["label"]) + lines = MPLPlot._plot(ax, x, y_values, style=style, **kwds) + cls._update_stacker(ax, stacking_id, y) + return lines + + @final + def _ts_plot(self, ax: Axes, x, data: Series, style=None, **kwds): + # accept x to be consistent with normal plot func, + # x is not passed to tsplot as it uses data.index as x coordinate + # column_num must be in kwds for stacking purpose + freq, data = maybe_resample(data, ax, kwds) + + # Set ax with freq info + decorate_axes(ax, freq) + # digging deeper + if hasattr(ax, "left_ax"): + decorate_axes(ax.left_ax, freq) + if hasattr(ax, "right_ax"): + decorate_axes(ax.right_ax, freq) + # TODO #54485 + ax._plot_data.append((data, self._kind, kwds)) # type: ignore[attr-defined] + + lines = self._plot(ax, data.index, np.asarray(data.values), style=style, **kwds) + # set date formatter, locators and rescale limits + # TODO #54485 + format_dateaxis(ax, ax.freq, data.index) # type: ignore[arg-type, attr-defined] + return lines + + @final + def _get_stacking_id(self) -> int | None: + if self.stacked: + return id(self.data) + else: + return None + + @final + @classmethod + def _initialize_stacker(cls, ax: Axes, stacking_id, n: int) -> None: + if stacking_id is None: + return + if not hasattr(ax, "_stacker_pos_prior"): + # TODO #54485 + ax._stacker_pos_prior = {} # type: ignore[attr-defined] + if not hasattr(ax, "_stacker_neg_prior"): + # TODO #54485 + ax._stacker_neg_prior = {} # type: ignore[attr-defined] + # TODO #54485 + ax._stacker_pos_prior[stacking_id] = np.zeros(n) # type: ignore[attr-defined] + # TODO #54485 + ax._stacker_neg_prior[stacking_id] = np.zeros(n) # type: ignore[attr-defined] + + @final + @classmethod + def _get_stacked_values( + cls, ax: Axes, stacking_id: int | None, values: np.ndarray, label + ) -> np.ndarray: + if stacking_id is None: + return values + if not hasattr(ax, "_stacker_pos_prior"): + # stacker may not be initialized for subplots + cls._initialize_stacker(ax, stacking_id, len(values)) + + if (values >= 0).all(): + # TODO #54485 + return ( + ax._stacker_pos_prior[stacking_id] # type: ignore[attr-defined] + + values + ) + elif (values <= 0).all(): + # TODO #54485 + return ( + ax._stacker_neg_prior[stacking_id] # type: ignore[attr-defined] + + values + ) + + raise ValueError( + "When stacked is True, each column must be either " + "all positive or all negative. " + f"Column '{label}' contains both positive and negative values" + ) + + @final + @classmethod + def _update_stacker(cls, ax: Axes, stacking_id: int | None, values) -> None: + if stacking_id is None: + return + if (values >= 0).all(): + # TODO #54485 + ax._stacker_pos_prior[stacking_id] += values # type: ignore[attr-defined] + elif (values <= 0).all(): + # TODO #54485 + ax._stacker_neg_prior[stacking_id] += values # type: ignore[attr-defined] + + def _post_plot_logic(self, ax: Axes, data) -> None: + from matplotlib.ticker import FixedLocator + + def get_label(i): + if is_float(i) and i.is_integer(): + i = int(i) + try: + return pprint_thing(data.index[i]) + except Exception: + return "" + + if self._need_to_set_index: + xticks = ax.get_xticks() + xticklabels = [get_label(x) for x in xticks] + # error: Argument 1 to "FixedLocator" has incompatible type "ndarray[Any, + # Any]"; expected "Sequence[float]" + ax.xaxis.set_major_locator(FixedLocator(xticks)) # type: ignore[arg-type] + ax.set_xticklabels(xticklabels) + + # If the index is an irregular time series, then by default + # we rotate the tick labels. The exception is if there are + # subplots which don't share their x-axes, in which we case + # we don't rotate the ticklabels as by default the subplots + # would be too close together. + condition = ( + not self._use_dynamic_x() + and (data.index._is_all_dates and self.use_index) + and (not self.subplots or (self.subplots and self.sharex)) + ) + + index_name = self._get_index_name() + + if condition: + # irregular TS rotated 30 deg. by default + # probably a better place to check / set this. + if not self._rot_set: + self.rot = 30 + format_date_labels(ax, rot=self.rot) + + if index_name is not None and self.use_index: + ax.set_xlabel(index_name) + + +class AreaPlot(LinePlot): + @property + def _kind(self) -> Literal["area"]: + return "area" + + def __init__(self, data, **kwargs) -> None: + kwargs.setdefault("stacked", True) + with warnings.catch_warnings(): + warnings.filterwarnings( + "ignore", + "Downcasting object dtype arrays", + category=FutureWarning, + ) + data = data.fillna(value=0) + LinePlot.__init__(self, data, **kwargs) + + if not self.stacked: + # use smaller alpha to distinguish overlap + self.kwds.setdefault("alpha", 0.5) + + if self.logy or self.loglog: + raise ValueError("Log-y scales are not supported in area plot") + + # error: Signature of "_plot" incompatible with supertype "MPLPlot" + @classmethod + def _plot( # type: ignore[override] + cls, + ax: Axes, + x, + y: np.ndarray, + style=None, + column_num=None, + stacking_id=None, + is_errorbar: bool = False, + **kwds, + ): + if column_num == 0: + cls._initialize_stacker(ax, stacking_id, len(y)) + y_values = cls._get_stacked_values(ax, stacking_id, y, kwds["label"]) + + # need to remove label, because subplots uses mpl legend as it is + line_kwds = kwds.copy() + line_kwds.pop("label") + lines = MPLPlot._plot(ax, x, y_values, style=style, **line_kwds) + + # get data from the line to get coordinates for fill_between + xdata, y_values = lines[0].get_data(orig=False) + + # unable to use ``_get_stacked_values`` here to get starting point + if stacking_id is None: + start = np.zeros(len(y)) + elif (y >= 0).all(): + # TODO #54485 + start = ax._stacker_pos_prior[stacking_id] # type: ignore[attr-defined] + elif (y <= 0).all(): + # TODO #54485 + start = ax._stacker_neg_prior[stacking_id] # type: ignore[attr-defined] + else: + start = np.zeros(len(y)) + + if "color" not in kwds: + kwds["color"] = lines[0].get_color() + + rect = ax.fill_between(xdata, start, y_values, **kwds) + cls._update_stacker(ax, stacking_id, y) + + # LinePlot expects list of artists + res = [rect] + return res + + def _post_plot_logic(self, ax: Axes, data) -> None: + LinePlot._post_plot_logic(self, ax, data) + + is_shared_y = len(list(ax.get_shared_y_axes())) > 0 + # do not override the default axis behaviour in case of shared y axes + if self.ylim is None and not is_shared_y: + if (data >= 0).all().all(): + ax.set_ylim(0, None) + elif (data <= 0).all().all(): + ax.set_ylim(None, 0) + + +class BarPlot(MPLPlot): + @property + def _kind(self) -> Literal["bar", "barh"]: + return "bar" + + _default_rot = 90 + + @property + def orientation(self) -> PlottingOrientation: + return "vertical" + + def __init__( + self, + data, + *, + align="center", + bottom=0, + left=0, + width=0.5, + position=0.5, + log=False, + **kwargs, + ) -> None: + # we have to treat a series differently than a + # 1-column DataFrame w.r.t. color handling + self._is_series = isinstance(data, ABCSeries) + self.bar_width = width + self._align = align + self._position = position + self.tick_pos = np.arange(len(data)) + + if is_list_like(bottom): + bottom = np.array(bottom) + if is_list_like(left): + left = np.array(left) + self.bottom = bottom + self.left = left + + self.log = log + + MPLPlot.__init__(self, data, **kwargs) + + @cache_readonly + def ax_pos(self) -> np.ndarray: + return self.tick_pos - self.tickoffset + + @cache_readonly + def tickoffset(self): + if self.stacked or self.subplots: + return self.bar_width * self._position + elif self._align == "edge": + w = self.bar_width / self.nseries + return self.bar_width * (self._position - 0.5) + w * 0.5 + else: + return self.bar_width * self._position + + @cache_readonly + def lim_offset(self): + if self.stacked or self.subplots: + if self._align == "edge": + return self.bar_width / 2 + else: + return 0 + elif self._align == "edge": + w = self.bar_width / self.nseries + return w * 0.5 + else: + return 0 + + # error: Signature of "_plot" incompatible with supertype "MPLPlot" + @classmethod + def _plot( # type: ignore[override] + cls, + ax: Axes, + x, + y: np.ndarray, + w, + start: int | npt.NDArray[np.intp] = 0, + log: bool = False, + **kwds, + ): + return ax.bar(x, y, w, bottom=start, log=log, **kwds) + + @property + def _start_base(self): + return self.bottom + + def _make_plot(self, fig: Figure) -> None: + colors = self._get_colors() + ncolors = len(colors) + + pos_prior = neg_prior = np.zeros(len(self.data)) + K = self.nseries + + data = self.data.fillna(0) + for i, (label, y) in enumerate(self._iter_data(data=data)): + ax = self._get_ax(i) + kwds = self.kwds.copy() + if self._is_series: + kwds["color"] = colors + elif isinstance(colors, dict): + kwds["color"] = colors[label] + else: + kwds["color"] = colors[i % ncolors] + + errors = self._get_errorbars(label=label, index=i) + kwds = dict(kwds, **errors) + + label = pprint_thing(label) + label = self._mark_right_label(label, index=i) + + if (("yerr" in kwds) or ("xerr" in kwds)) and (kwds.get("ecolor") is None): + kwds["ecolor"] = mpl.rcParams["xtick.color"] + + start = 0 + if self.log and (y >= 1).all(): + start = 1 + start = start + self._start_base + + kwds["align"] = self._align + if self.subplots: + w = self.bar_width / 2 + rect = self._plot( + ax, + self.ax_pos + w, + y, + self.bar_width, + start=start, + label=label, + log=self.log, + **kwds, + ) + ax.set_title(label) + elif self.stacked: + mask = y > 0 + start = np.where(mask, pos_prior, neg_prior) + self._start_base + w = self.bar_width / 2 + rect = self._plot( + ax, + self.ax_pos + w, + y, + self.bar_width, + start=start, + label=label, + log=self.log, + **kwds, + ) + pos_prior = pos_prior + np.where(mask, y, 0) + neg_prior = neg_prior + np.where(mask, 0, y) + else: + w = self.bar_width / K + rect = self._plot( + ax, + self.ax_pos + (i + 0.5) * w, + y, + w, + start=start, + label=label, + log=self.log, + **kwds, + ) + self._append_legend_handles_labels(rect, label) + + def _post_plot_logic(self, ax: Axes, data) -> None: + if self.use_index: + str_index = [pprint_thing(key) for key in data.index] + else: + str_index = [pprint_thing(key) for key in range(data.shape[0])] + + s_edge = self.ax_pos[0] - 0.25 + self.lim_offset + e_edge = self.ax_pos[-1] + 0.25 + self.bar_width + self.lim_offset + + self._decorate_ticks(ax, self._get_index_name(), str_index, s_edge, e_edge) + + def _decorate_ticks( + self, + ax: Axes, + name: str | None, + ticklabels: list[str], + start_edge: float, + end_edge: float, + ) -> None: + ax.set_xlim((start_edge, end_edge)) + + if self.xticks is not None: + ax.set_xticks(np.array(self.xticks)) + else: + ax.set_xticks(self.tick_pos) + ax.set_xticklabels(ticklabels) + + if name is not None and self.use_index: + ax.set_xlabel(name) + + +class BarhPlot(BarPlot): + @property + def _kind(self) -> Literal["barh"]: + return "barh" + + _default_rot = 0 + + @property + def orientation(self) -> Literal["horizontal"]: + return "horizontal" + + @property + def _start_base(self): + return self.left + + # error: Signature of "_plot" incompatible with supertype "MPLPlot" + @classmethod + def _plot( # type: ignore[override] + cls, + ax: Axes, + x, + y: np.ndarray, + w, + start: int | npt.NDArray[np.intp] = 0, + log: bool = False, + **kwds, + ): + return ax.barh(x, y, w, left=start, log=log, **kwds) + + def _get_custom_index_name(self): + return self.ylabel + + def _decorate_ticks( + self, + ax: Axes, + name: str | None, + ticklabels: list[str], + start_edge: float, + end_edge: float, + ) -> None: + # horizontal bars + ax.set_ylim((start_edge, end_edge)) + ax.set_yticks(self.tick_pos) + ax.set_yticklabels(ticklabels) + if name is not None and self.use_index: + ax.set_ylabel(name) + # error: Argument 1 to "set_xlabel" of "_AxesBase" has incompatible type + # "Hashable | None"; expected "str" + ax.set_xlabel(self.xlabel) # type: ignore[arg-type] + + +class PiePlot(MPLPlot): + @property + def _kind(self) -> Literal["pie"]: + return "pie" + + _layout_type = "horizontal" + + def __init__(self, data, kind=None, **kwargs) -> None: + data = data.fillna(value=0) + if (data < 0).any().any(): + raise ValueError(f"{self._kind} plot doesn't allow negative values") + MPLPlot.__init__(self, data, kind=kind, **kwargs) + + @classmethod + def _validate_log_kwd( + cls, + kwd: str, + value: bool | None | Literal["sym"], + ) -> bool | None | Literal["sym"]: + super()._validate_log_kwd(kwd=kwd, value=value) + if value is not False: + warnings.warn( + f"PiePlot ignores the '{kwd}' keyword", + UserWarning, + stacklevel=find_stack_level(), + ) + return False + + def _validate_color_args(self, color, colormap) -> None: + # TODO: warn if color is passed and ignored? + return None + + def _make_plot(self, fig: Figure) -> None: + colors = self._get_colors(num_colors=len(self.data), color_kwds="colors") + self.kwds.setdefault("colors", colors) + + for i, (label, y) in enumerate(self._iter_data(data=self.data)): + ax = self._get_ax(i) + if label is not None: + label = pprint_thing(label) + ax.set_ylabel(label) + + kwds = self.kwds.copy() + + def blank_labeler(label, value): + if value == 0: + return "" + else: + return label + + idx = [pprint_thing(v) for v in self.data.index] + labels = kwds.pop("labels", idx) + # labels is used for each wedge's labels + # Blank out labels for values of 0 so they don't overlap + # with nonzero wedges + if labels is not None: + blabels = [blank_labeler(left, value) for left, value in zip(labels, y)] + else: + blabels = None + results = ax.pie(y, labels=blabels, **kwds) + + if kwds.get("autopct", None) is not None: + patches, texts, autotexts = results + else: + patches, texts = results + autotexts = [] + + if self.fontsize is not None: + for t in texts + autotexts: + t.set_fontsize(self.fontsize) + + # leglabels is used for legend labels + leglabels = labels if labels is not None else idx + for _patch, _leglabel in zip(patches, leglabels): + self._append_legend_handles_labels(_patch, _leglabel) + + def _post_plot_logic(self, ax: Axes, data) -> None: + pass diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/groupby.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/groupby.py new file mode 100644 index 0000000000000000000000000000000000000000..cbb66065a8039c63b7181619aea3aa74277da4a5 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/groupby.py @@ -0,0 +1,142 @@ +from __future__ import annotations + +from typing import TYPE_CHECKING + +import numpy as np + +from pandas.core.dtypes.missing import remove_na_arraylike + +from pandas import ( + MultiIndex, + concat, +) + +from pandas.plotting._matplotlib.misc import unpack_single_str_list + +if TYPE_CHECKING: + from collections.abc import Hashable + + from pandas._typing import IndexLabel + + from pandas import ( + DataFrame, + Series, + ) + + +def create_iter_data_given_by( + data: DataFrame, kind: str = "hist" +) -> dict[Hashable, DataFrame | Series]: + """ + Create data for iteration given `by` is assigned or not, and it is only + used in both hist and boxplot. + + If `by` is assigned, return a dictionary of DataFrames in which the key of + dictionary is the values in groups. + If `by` is not assigned, return input as is, and this preserves current + status of iter_data. + + Parameters + ---------- + data : reformatted grouped data from `_compute_plot_data` method. + kind : str, plot kind. This function is only used for `hist` and `box` plots. + + Returns + ------- + iter_data : DataFrame or Dictionary of DataFrames + + Examples + -------- + If `by` is assigned: + + >>> import numpy as np + >>> tuples = [('h1', 'a'), ('h1', 'b'), ('h2', 'a'), ('h2', 'b')] + >>> mi = pd.MultiIndex.from_tuples(tuples) + >>> value = [[1, 3, np.nan, np.nan], + ... [3, 4, np.nan, np.nan], [np.nan, np.nan, 5, 6]] + >>> data = pd.DataFrame(value, columns=mi) + >>> create_iter_data_given_by(data) + {'h1': h1 + a b + 0 1.0 3.0 + 1 3.0 4.0 + 2 NaN NaN, 'h2': h2 + a b + 0 NaN NaN + 1 NaN NaN + 2 5.0 6.0} + """ + + # For `hist` plot, before transformation, the values in level 0 are values + # in groups and subplot titles, and later used for column subselection and + # iteration; For `box` plot, values in level 1 are column names to show, + # and are used for iteration and as subplots titles. + if kind == "hist": + level = 0 + else: + level = 1 + + # Select sub-columns based on the value of level of MI, and if `by` is + # assigned, data must be a MI DataFrame + assert isinstance(data.columns, MultiIndex) + return { + col: data.loc[:, data.columns.get_level_values(level) == col] + for col in data.columns.levels[level] + } + + +def reconstruct_data_with_by( + data: DataFrame, by: IndexLabel, cols: IndexLabel +) -> DataFrame: + """ + Internal function to group data, and reassign multiindex column names onto the + result in order to let grouped data be used in _compute_plot_data method. + + Parameters + ---------- + data : Original DataFrame to plot + by : grouped `by` parameter selected by users + cols : columns of data set (excluding columns used in `by`) + + Returns + ------- + Output is the reconstructed DataFrame with MultiIndex columns. The first level + of MI is unique values of groups, and second level of MI is the columns + selected by users. + + Examples + -------- + >>> d = {'h': ['h1', 'h1', 'h2'], 'a': [1, 3, 5], 'b': [3, 4, 6]} + >>> df = pd.DataFrame(d) + >>> reconstruct_data_with_by(df, by='h', cols=['a', 'b']) + h1 h2 + a b a b + 0 1.0 3.0 NaN NaN + 1 3.0 4.0 NaN NaN + 2 NaN NaN 5.0 6.0 + """ + by_modified = unpack_single_str_list(by) + grouped = data.groupby(by_modified) + + data_list = [] + for key, group in grouped: + # error: List item 1 has incompatible type "Union[Hashable, + # Sequence[Hashable]]"; expected "Iterable[Hashable]" + columns = MultiIndex.from_product([[key], cols]) # type: ignore[list-item] + sub_group = group[cols] + sub_group.columns = columns + data_list.append(sub_group) + + data = concat(data_list, axis=1) + return data + + +def reformat_hist_y_given_by(y: np.ndarray, by: IndexLabel | None) -> np.ndarray: + """Internal function to reformat y given `by` is applied or not for hist plot. + + If by is None, input y is 1-d with NaN removed; and if by is not None, groupby + will take place and input y is multi-dimensional array. + """ + if by is not None and len(y.shape) > 1: + return np.array([remove_na_arraylike(col) for col in y.T]).T + return remove_na_arraylike(y) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/hist.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/hist.py new file mode 100644 index 0000000000000000000000000000000000000000..e610f1adb602c46ffd7affa50c0f857ad7d030e4 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/hist.py @@ -0,0 +1,581 @@ +from __future__ import annotations + +from typing import ( + TYPE_CHECKING, + Any, + Literal, + final, +) + +import numpy as np + +from pandas.core.dtypes.common import ( + is_integer, + is_list_like, +) +from pandas.core.dtypes.generic import ( + ABCDataFrame, + ABCIndex, +) +from pandas.core.dtypes.missing import ( + isna, + remove_na_arraylike, +) + +from pandas.io.formats.printing import pprint_thing +from pandas.plotting._matplotlib.core import ( + LinePlot, + MPLPlot, +) +from pandas.plotting._matplotlib.groupby import ( + create_iter_data_given_by, + reformat_hist_y_given_by, +) +from pandas.plotting._matplotlib.misc import unpack_single_str_list +from pandas.plotting._matplotlib.tools import ( + create_subplots, + flatten_axes, + maybe_adjust_figure, + set_ticks_props, +) + +if TYPE_CHECKING: + from matplotlib.axes import Axes + from matplotlib.figure import Figure + + from pandas._typing import PlottingOrientation + + from pandas import ( + DataFrame, + Series, + ) + + +class HistPlot(LinePlot): + @property + def _kind(self) -> Literal["hist", "kde"]: + return "hist" + + def __init__( + self, + data, + bins: int | np.ndarray | list[np.ndarray] = 10, + bottom: int | np.ndarray = 0, + *, + range=None, + weights=None, + **kwargs, + ) -> None: + if is_list_like(bottom): + bottom = np.array(bottom) + self.bottom = bottom + + self._bin_range = range + self.weights = weights + + self.xlabel = kwargs.get("xlabel") + self.ylabel = kwargs.get("ylabel") + # Do not call LinePlot.__init__ which may fill nan + MPLPlot.__init__(self, data, **kwargs) # pylint: disable=non-parent-init-called + + self.bins = self._adjust_bins(bins) + + def _adjust_bins(self, bins: int | np.ndarray | list[np.ndarray]): + if is_integer(bins): + if self.by is not None: + by_modified = unpack_single_str_list(self.by) + grouped = self.data.groupby(by_modified)[self.columns] + bins = [self._calculate_bins(group, bins) for key, group in grouped] + else: + bins = self._calculate_bins(self.data, bins) + return bins + + def _calculate_bins(self, data: Series | DataFrame, bins) -> np.ndarray: + """Calculate bins given data""" + nd_values = data.infer_objects(copy=False)._get_numeric_data() + values = np.ravel(nd_values) + values = values[~isna(values)] + + hist, bins = np.histogram(values, bins=bins, range=self._bin_range) + return bins + + # error: Signature of "_plot" incompatible with supertype "LinePlot" + @classmethod + def _plot( # type: ignore[override] + cls, + ax: Axes, + y: np.ndarray, + style=None, + bottom: int | np.ndarray = 0, + column_num: int = 0, + stacking_id=None, + *, + bins, + **kwds, + ): + if column_num == 0: + cls._initialize_stacker(ax, stacking_id, len(bins) - 1) + + base = np.zeros(len(bins) - 1) + bottom = bottom + cls._get_stacked_values(ax, stacking_id, base, kwds["label"]) + # ignore style + n, bins, patches = ax.hist(y, bins=bins, bottom=bottom, **kwds) + cls._update_stacker(ax, stacking_id, n) + return patches + + def _make_plot(self, fig: Figure) -> None: + colors = self._get_colors() + stacking_id = self._get_stacking_id() + + # Re-create iterated data if `by` is assigned by users + data = ( + create_iter_data_given_by(self.data, self._kind) + if self.by is not None + else self.data + ) + + # error: Argument "data" to "_iter_data" of "MPLPlot" has incompatible + # type "object"; expected "DataFrame | dict[Hashable, Series | DataFrame]" + for i, (label, y) in enumerate(self._iter_data(data=data)): # type: ignore[arg-type] + ax = self._get_ax(i) + + kwds = self.kwds.copy() + if self.color is not None: + kwds["color"] = self.color + + label = pprint_thing(label) + label = self._mark_right_label(label, index=i) + kwds["label"] = label + + style, kwds = self._apply_style_colors(colors, kwds, i, label) + if style is not None: + kwds["style"] = style + + self._make_plot_keywords(kwds, y) + + # the bins is multi-dimension array now and each plot need only 1-d and + # when by is applied, label should be columns that are grouped + if self.by is not None: + kwds["bins"] = kwds["bins"][i] + kwds["label"] = self.columns + kwds.pop("color") + + if self.weights is not None: + kwds["weights"] = type(self)._get_column_weights(self.weights, i, y) + + y = reformat_hist_y_given_by(y, self.by) + + artists = self._plot(ax, y, column_num=i, stacking_id=stacking_id, **kwds) + + # when by is applied, show title for subplots to know which group it is + if self.by is not None: + ax.set_title(pprint_thing(label)) + + self._append_legend_handles_labels(artists[0], label) + + def _make_plot_keywords(self, kwds: dict[str, Any], y: np.ndarray) -> None: + """merge BoxPlot/KdePlot properties to passed kwds""" + # y is required for KdePlot + kwds["bottom"] = self.bottom + kwds["bins"] = self.bins + + @final + @staticmethod + def _get_column_weights(weights, i: int, y): + # We allow weights to be a multi-dimensional array, e.g. a (10, 2) array, + # and each sub-array (10,) will be called in each iteration. If users only + # provide 1D array, we assume the same weights is used for all iterations + if weights is not None: + if np.ndim(weights) != 1 and np.shape(weights)[-1] != 1: + try: + weights = weights[:, i] + except IndexError as err: + raise ValueError( + "weights must have the same shape as data, " + "or be a single column" + ) from err + weights = weights[~isna(y)] + return weights + + def _post_plot_logic(self, ax: Axes, data) -> None: + if self.orientation == "horizontal": + # error: Argument 1 to "set_xlabel" of "_AxesBase" has incompatible + # type "Hashable"; expected "str" + ax.set_xlabel( + "Frequency" + if self.xlabel is None + else self.xlabel # type: ignore[arg-type] + ) + ax.set_ylabel(self.ylabel) # type: ignore[arg-type] + else: + ax.set_xlabel(self.xlabel) # type: ignore[arg-type] + ax.set_ylabel( + "Frequency" + if self.ylabel is None + else self.ylabel # type: ignore[arg-type] + ) + + @property + def orientation(self) -> PlottingOrientation: + if self.kwds.get("orientation", None) == "horizontal": + return "horizontal" + else: + return "vertical" + + +class KdePlot(HistPlot): + @property + def _kind(self) -> Literal["kde"]: + return "kde" + + @property + def orientation(self) -> Literal["vertical"]: + return "vertical" + + def __init__( + self, data, bw_method=None, ind=None, *, weights=None, **kwargs + ) -> None: + # Do not call LinePlot.__init__ which may fill nan + MPLPlot.__init__(self, data, **kwargs) # pylint: disable=non-parent-init-called + self.bw_method = bw_method + self.ind = ind + self.weights = weights + + @staticmethod + def _get_ind(y: np.ndarray, ind): + if ind is None: + # np.nanmax() and np.nanmin() ignores the missing values + sample_range = np.nanmax(y) - np.nanmin(y) + ind = np.linspace( + np.nanmin(y) - 0.5 * sample_range, + np.nanmax(y) + 0.5 * sample_range, + 1000, + ) + elif is_integer(ind): + sample_range = np.nanmax(y) - np.nanmin(y) + ind = np.linspace( + np.nanmin(y) - 0.5 * sample_range, + np.nanmax(y) + 0.5 * sample_range, + ind, + ) + return ind + + @classmethod + # error: Signature of "_plot" incompatible with supertype "MPLPlot" + def _plot( # type: ignore[override] + cls, + ax: Axes, + y: np.ndarray, + style=None, + bw_method=None, + ind=None, + column_num=None, + stacking_id: int | None = None, + **kwds, + ): + from scipy.stats import gaussian_kde + + y = remove_na_arraylike(y) + gkde = gaussian_kde(y, bw_method=bw_method) + + y = gkde.evaluate(ind) + lines = MPLPlot._plot(ax, ind, y, style=style, **kwds) + return lines + + def _make_plot_keywords(self, kwds: dict[str, Any], y: np.ndarray) -> None: + kwds["bw_method"] = self.bw_method + kwds["ind"] = type(self)._get_ind(y, ind=self.ind) + + def _post_plot_logic(self, ax: Axes, data) -> None: + ax.set_ylabel("Density") + + +def _grouped_plot( + plotf, + data: Series | DataFrame, + column=None, + by=None, + numeric_only: bool = True, + figsize: tuple[float, float] | None = None, + sharex: bool = True, + sharey: bool = True, + layout=None, + rot: float = 0, + ax=None, + **kwargs, +): + # error: Non-overlapping equality check (left operand type: "Optional[Tuple[float, + # float]]", right operand type: "Literal['default']") + if figsize == "default": # type: ignore[comparison-overlap] + # allowed to specify mpl default with 'default' + raise ValueError( + "figsize='default' is no longer supported. " + "Specify figure size by tuple instead" + ) + + grouped = data.groupby(by) + if column is not None: + grouped = grouped[column] + + naxes = len(grouped) + fig, axes = create_subplots( + naxes=naxes, figsize=figsize, sharex=sharex, sharey=sharey, ax=ax, layout=layout + ) + + _axes = flatten_axes(axes) + + for i, (key, group) in enumerate(grouped): + ax = _axes[i] + if numeric_only and isinstance(group, ABCDataFrame): + group = group._get_numeric_data() + plotf(group, ax, **kwargs) + ax.set_title(pprint_thing(key)) + + return fig, axes + + +def _grouped_hist( + data: Series | DataFrame, + column=None, + by=None, + ax=None, + bins: int = 50, + figsize: tuple[float, float] | None = None, + layout=None, + sharex: bool = False, + sharey: bool = False, + rot: float = 90, + grid: bool = True, + xlabelsize: int | None = None, + xrot=None, + ylabelsize: int | None = None, + yrot=None, + legend: bool = False, + **kwargs, +): + """ + Grouped histogram + + Parameters + ---------- + data : Series/DataFrame + column : object, optional + by : object, optional + ax : axes, optional + bins : int, default 50 + figsize : tuple, optional + layout : optional + sharex : bool, default False + sharey : bool, default False + rot : float, default 90 + grid : bool, default True + legend: : bool, default False + kwargs : dict, keyword arguments passed to matplotlib.Axes.hist + + Returns + ------- + collection of Matplotlib Axes + """ + if legend: + assert "label" not in kwargs + if data.ndim == 1: + kwargs["label"] = data.name + elif column is None: + kwargs["label"] = data.columns + else: + kwargs["label"] = column + + def plot_group(group, ax) -> None: + ax.hist(group.dropna().values, bins=bins, **kwargs) + if legend: + ax.legend() + + if xrot is None: + xrot = rot + + fig, axes = _grouped_plot( + plot_group, + data, + column=column, + by=by, + sharex=sharex, + sharey=sharey, + ax=ax, + figsize=figsize, + layout=layout, + rot=rot, + ) + + set_ticks_props( + axes, xlabelsize=xlabelsize, xrot=xrot, ylabelsize=ylabelsize, yrot=yrot + ) + + maybe_adjust_figure( + fig, bottom=0.15, top=0.9, left=0.1, right=0.9, hspace=0.5, wspace=0.3 + ) + return axes + + +def hist_series( + self: Series, + by=None, + ax=None, + grid: bool = True, + xlabelsize: int | None = None, + xrot=None, + ylabelsize: int | None = None, + yrot=None, + figsize: tuple[float, float] | None = None, + bins: int = 10, + legend: bool = False, + **kwds, +): + import matplotlib.pyplot as plt + + if legend and "label" in kwds: + raise ValueError("Cannot use both legend and label") + + if by is None: + if kwds.get("layout", None) is not None: + raise ValueError("The 'layout' keyword is not supported when 'by' is None") + # hack until the plotting interface is a bit more unified + fig = kwds.pop( + "figure", plt.gcf() if plt.get_fignums() else plt.figure(figsize=figsize) + ) + if figsize is not None and tuple(figsize) != tuple(fig.get_size_inches()): + fig.set_size_inches(*figsize, forward=True) + if ax is None: + ax = fig.gca() + elif ax.get_figure() != fig: + raise AssertionError("passed axis not bound to passed figure") + values = self.dropna().values + if legend: + kwds["label"] = self.name + ax.hist(values, bins=bins, **kwds) + if legend: + ax.legend() + ax.grid(grid) + axes = np.array([ax]) + + # error: Argument 1 to "set_ticks_props" has incompatible type "ndarray[Any, + # dtype[Any]]"; expected "Axes | Sequence[Axes]" + set_ticks_props( + axes, # type: ignore[arg-type] + xlabelsize=xlabelsize, + xrot=xrot, + ylabelsize=ylabelsize, + yrot=yrot, + ) + + else: + if "figure" in kwds: + raise ValueError( + "Cannot pass 'figure' when using the " + "'by' argument, since a new 'Figure' instance will be created" + ) + axes = _grouped_hist( + self, + by=by, + ax=ax, + grid=grid, + figsize=figsize, + bins=bins, + xlabelsize=xlabelsize, + xrot=xrot, + ylabelsize=ylabelsize, + yrot=yrot, + legend=legend, + **kwds, + ) + + if hasattr(axes, "ndim"): + if axes.ndim == 1 and len(axes) == 1: + return axes[0] + return axes + + +def hist_frame( + data: DataFrame, + column=None, + by=None, + grid: bool = True, + xlabelsize: int | None = None, + xrot=None, + ylabelsize: int | None = None, + yrot=None, + ax=None, + sharex: bool = False, + sharey: bool = False, + figsize: tuple[float, float] | None = None, + layout=None, + bins: int = 10, + legend: bool = False, + **kwds, +): + if legend and "label" in kwds: + raise ValueError("Cannot use both legend and label") + if by is not None: + axes = _grouped_hist( + data, + column=column, + by=by, + ax=ax, + grid=grid, + figsize=figsize, + sharex=sharex, + sharey=sharey, + layout=layout, + bins=bins, + xlabelsize=xlabelsize, + xrot=xrot, + ylabelsize=ylabelsize, + yrot=yrot, + legend=legend, + **kwds, + ) + return axes + + if column is not None: + if not isinstance(column, (list, np.ndarray, ABCIndex)): + column = [column] + data = data[column] + # GH32590 + data = data.select_dtypes( + include=(np.number, "datetime64", "datetimetz"), exclude="timedelta" + ) + naxes = len(data.columns) + + if naxes == 0: + raise ValueError( + "hist method requires numerical or datetime columns, nothing to plot." + ) + + fig, axes = create_subplots( + naxes=naxes, + ax=ax, + squeeze=False, + sharex=sharex, + sharey=sharey, + figsize=figsize, + layout=layout, + ) + _axes = flatten_axes(axes) + + can_set_label = "label" not in kwds + + for i, col in enumerate(data.columns): + ax = _axes[i] + if legend and can_set_label: + kwds["label"] = col + ax.hist(data[col].dropna().values, bins=bins, **kwds) + ax.set_title(col) + ax.grid(grid) + if legend: + ax.legend() + + set_ticks_props( + axes, xlabelsize=xlabelsize, xrot=xrot, ylabelsize=ylabelsize, yrot=yrot + ) + maybe_adjust_figure(fig, wspace=0.3, hspace=0.3) + + return axes diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/misc.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/misc.py new file mode 100644 index 0000000000000000000000000000000000000000..1f9212587e05e2e3689b680ff01ae7780230657e --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/misc.py @@ -0,0 +1,481 @@ +from __future__ import annotations + +import random +from typing import TYPE_CHECKING + +from matplotlib import patches +import matplotlib.lines as mlines +import numpy as np + +from pandas.core.dtypes.missing import notna + +from pandas.io.formats.printing import pprint_thing +from pandas.plotting._matplotlib.style import get_standard_colors +from pandas.plotting._matplotlib.tools import ( + create_subplots, + do_adjust_figure, + maybe_adjust_figure, + set_ticks_props, +) + +if TYPE_CHECKING: + from collections.abc import Hashable + + from matplotlib.axes import Axes + from matplotlib.figure import Figure + + from pandas import ( + DataFrame, + Index, + Series, + ) + + +def scatter_matrix( + frame: DataFrame, + alpha: float = 0.5, + figsize: tuple[float, float] | None = None, + ax=None, + grid: bool = False, + diagonal: str = "hist", + marker: str = ".", + density_kwds=None, + hist_kwds=None, + range_padding: float = 0.05, + **kwds, +): + df = frame._get_numeric_data() + n = df.columns.size + naxes = n * n + fig, axes = create_subplots(naxes=naxes, figsize=figsize, ax=ax, squeeze=False) + + # no gaps between subplots + maybe_adjust_figure(fig, wspace=0, hspace=0) + + mask = notna(df) + + marker = _get_marker_compat(marker) + + hist_kwds = hist_kwds or {} + density_kwds = density_kwds or {} + + # GH 14855 + kwds.setdefault("edgecolors", "none") + + boundaries_list = [] + for a in df.columns: + values = df[a].values[mask[a].values] + rmin_, rmax_ = np.min(values), np.max(values) + rdelta_ext = (rmax_ - rmin_) * range_padding / 2 + boundaries_list.append((rmin_ - rdelta_ext, rmax_ + rdelta_ext)) + + for i, a in enumerate(df.columns): + for j, b in enumerate(df.columns): + ax = axes[i, j] + + if i == j: + values = df[a].values[mask[a].values] + + # Deal with the diagonal by drawing a histogram there. + if diagonal == "hist": + ax.hist(values, **hist_kwds) + + elif diagonal in ("kde", "density"): + from scipy.stats import gaussian_kde + + y = values + gkde = gaussian_kde(y) + ind = np.linspace(y.min(), y.max(), 1000) + ax.plot(ind, gkde.evaluate(ind), **density_kwds) + + ax.set_xlim(boundaries_list[i]) + + else: + common = (mask[a] & mask[b]).values + + ax.scatter( + df[b][common], df[a][common], marker=marker, alpha=alpha, **kwds + ) + + ax.set_xlim(boundaries_list[j]) + ax.set_ylim(boundaries_list[i]) + + ax.set_xlabel(b) + ax.set_ylabel(a) + + if j != 0: + ax.yaxis.set_visible(False) + if i != n - 1: + ax.xaxis.set_visible(False) + + if len(df.columns) > 1: + lim1 = boundaries_list[0] + locs = axes[0][1].yaxis.get_majorticklocs() + locs = locs[(lim1[0] <= locs) & (locs <= lim1[1])] + adj = (locs - lim1[0]) / (lim1[1] - lim1[0]) + + lim0 = axes[0][0].get_ylim() + adj = adj * (lim0[1] - lim0[0]) + lim0[0] + axes[0][0].yaxis.set_ticks(adj) + + if np.all(locs == locs.astype(int)): + # if all ticks are int + locs = locs.astype(int) + axes[0][0].yaxis.set_ticklabels(locs) + + set_ticks_props(axes, xlabelsize=8, xrot=90, ylabelsize=8, yrot=0) + + return axes + + +def _get_marker_compat(marker): + if marker not in mlines.lineMarkers: + return "o" + return marker + + +def radviz( + frame: DataFrame, + class_column, + ax: Axes | None = None, + color=None, + colormap=None, + **kwds, +) -> Axes: + import matplotlib.pyplot as plt + + def normalize(series): + a = min(series) + b = max(series) + return (series - a) / (b - a) + + n = len(frame) + classes = frame[class_column].drop_duplicates() + class_col = frame[class_column] + df = frame.drop(class_column, axis=1).apply(normalize) + + if ax is None: + ax = plt.gca() + ax.set_xlim(-1, 1) + ax.set_ylim(-1, 1) + + to_plot: dict[Hashable, list[list]] = {} + colors = get_standard_colors( + num_colors=len(classes), colormap=colormap, color_type="random", color=color + ) + + for kls in classes: + to_plot[kls] = [[], []] + + m = len(frame.columns) - 1 + s = np.array( + [(np.cos(t), np.sin(t)) for t in [2 * np.pi * (i / m) for i in range(m)]] + ) + + for i in range(n): + row = df.iloc[i].values + row_ = np.repeat(np.expand_dims(row, axis=1), 2, axis=1) + y = (s * row_).sum(axis=0) / row.sum() + kls = class_col.iat[i] + to_plot[kls][0].append(y[0]) + to_plot[kls][1].append(y[1]) + + for i, kls in enumerate(classes): + ax.scatter( + to_plot[kls][0], + to_plot[kls][1], + color=colors[i], + label=pprint_thing(kls), + **kwds, + ) + ax.legend() + + ax.add_patch(patches.Circle((0.0, 0.0), radius=1.0, facecolor="none")) + + for xy, name in zip(s, df.columns): + ax.add_patch(patches.Circle(xy, radius=0.025, facecolor="gray")) + + if xy[0] < 0.0 and xy[1] < 0.0: + ax.text( + xy[0] - 0.025, xy[1] - 0.025, name, ha="right", va="top", size="small" + ) + elif xy[0] < 0.0 <= xy[1]: + ax.text( + xy[0] - 0.025, + xy[1] + 0.025, + name, + ha="right", + va="bottom", + size="small", + ) + elif xy[1] < 0.0 <= xy[0]: + ax.text( + xy[0] + 0.025, xy[1] - 0.025, name, ha="left", va="top", size="small" + ) + elif xy[0] >= 0.0 and xy[1] >= 0.0: + ax.text( + xy[0] + 0.025, xy[1] + 0.025, name, ha="left", va="bottom", size="small" + ) + + ax.axis("equal") + return ax + + +def andrews_curves( + frame: DataFrame, + class_column, + ax: Axes | None = None, + samples: int = 200, + color=None, + colormap=None, + **kwds, +) -> Axes: + import matplotlib.pyplot as plt + + def function(amplitudes): + def f(t): + x1 = amplitudes[0] + result = x1 / np.sqrt(2.0) + + # Take the rest of the coefficients and resize them + # appropriately. Take a copy of amplitudes as otherwise numpy + # deletes the element from amplitudes itself. + coeffs = np.delete(np.copy(amplitudes), 0) + coeffs = np.resize(coeffs, (int((coeffs.size + 1) / 2), 2)) + + # Generate the harmonics and arguments for the sin and cos + # functions. + harmonics = np.arange(0, coeffs.shape[0]) + 1 + trig_args = np.outer(harmonics, t) + + result += np.sum( + coeffs[:, 0, np.newaxis] * np.sin(trig_args) + + coeffs[:, 1, np.newaxis] * np.cos(trig_args), + axis=0, + ) + return result + + return f + + n = len(frame) + class_col = frame[class_column] + classes = frame[class_column].drop_duplicates() + df = frame.drop(class_column, axis=1) + t = np.linspace(-np.pi, np.pi, samples) + used_legends: set[str] = set() + + color_values = get_standard_colors( + num_colors=len(classes), colormap=colormap, color_type="random", color=color + ) + colors = dict(zip(classes, color_values)) + if ax is None: + ax = plt.gca() + ax.set_xlim(-np.pi, np.pi) + for i in range(n): + row = df.iloc[i].values + f = function(row) + y = f(t) + kls = class_col.iat[i] + label = pprint_thing(kls) + if label not in used_legends: + used_legends.add(label) + ax.plot(t, y, color=colors[kls], label=label, **kwds) + else: + ax.plot(t, y, color=colors[kls], **kwds) + + ax.legend(loc="upper right") + ax.grid() + return ax + + +def bootstrap_plot( + series: Series, + fig: Figure | None = None, + size: int = 50, + samples: int = 500, + **kwds, +) -> Figure: + import matplotlib.pyplot as plt + + # TODO: is the failure mentioned below still relevant? + # random.sample(ndarray, int) fails on python 3.3, sigh + data = list(series.values) + samplings = [random.sample(data, size) for _ in range(samples)] + + means = np.array([np.mean(sampling) for sampling in samplings]) + medians = np.array([np.median(sampling) for sampling in samplings]) + midranges = np.array( + [(min(sampling) + max(sampling)) * 0.5 for sampling in samplings] + ) + if fig is None: + fig = plt.figure() + x = list(range(samples)) + axes = [] + ax1 = fig.add_subplot(2, 3, 1) + ax1.set_xlabel("Sample") + axes.append(ax1) + ax1.plot(x, means, **kwds) + ax2 = fig.add_subplot(2, 3, 2) + ax2.set_xlabel("Sample") + axes.append(ax2) + ax2.plot(x, medians, **kwds) + ax3 = fig.add_subplot(2, 3, 3) + ax3.set_xlabel("Sample") + axes.append(ax3) + ax3.plot(x, midranges, **kwds) + ax4 = fig.add_subplot(2, 3, 4) + ax4.set_xlabel("Mean") + axes.append(ax4) + ax4.hist(means, **kwds) + ax5 = fig.add_subplot(2, 3, 5) + ax5.set_xlabel("Median") + axes.append(ax5) + ax5.hist(medians, **kwds) + ax6 = fig.add_subplot(2, 3, 6) + ax6.set_xlabel("Midrange") + axes.append(ax6) + ax6.hist(midranges, **kwds) + for axis in axes: + plt.setp(axis.get_xticklabels(), fontsize=8) + plt.setp(axis.get_yticklabels(), fontsize=8) + if do_adjust_figure(fig): + plt.tight_layout() + return fig + + +def parallel_coordinates( + frame: DataFrame, + class_column, + cols=None, + ax: Axes | None = None, + color=None, + use_columns: bool = False, + xticks=None, + colormap=None, + axvlines: bool = True, + axvlines_kwds=None, + sort_labels: bool = False, + **kwds, +) -> Axes: + import matplotlib.pyplot as plt + + if axvlines_kwds is None: + axvlines_kwds = {"linewidth": 1, "color": "black"} + + n = len(frame) + classes = frame[class_column].drop_duplicates() + class_col = frame[class_column] + + if cols is None: + df = frame.drop(class_column, axis=1) + else: + df = frame[cols] + + used_legends: set[str] = set() + + ncols = len(df.columns) + + # determine values to use for xticks + x: list[int] | Index + if use_columns is True: + if not np.all(np.isreal(list(df.columns))): + raise ValueError("Columns must be numeric to be used as xticks") + x = df.columns + elif xticks is not None: + if not np.all(np.isreal(xticks)): + raise ValueError("xticks specified must be numeric") + if len(xticks) != ncols: + raise ValueError("Length of xticks must match number of columns") + x = xticks + else: + x = list(range(ncols)) + + if ax is None: + ax = plt.gca() + + color_values = get_standard_colors( + num_colors=len(classes), colormap=colormap, color_type="random", color=color + ) + + if sort_labels: + classes = sorted(classes) + color_values = sorted(color_values) + colors = dict(zip(classes, color_values)) + + for i in range(n): + y = df.iloc[i].values + kls = class_col.iat[i] + label = pprint_thing(kls) + if label not in used_legends: + used_legends.add(label) + ax.plot(x, y, color=colors[kls], label=label, **kwds) + else: + ax.plot(x, y, color=colors[kls], **kwds) + + if axvlines: + for i in x: + ax.axvline(i, **axvlines_kwds) + + ax.set_xticks(x) + ax.set_xticklabels(df.columns) + ax.set_xlim(x[0], x[-1]) + ax.legend(loc="upper right") + ax.grid() + return ax + + +def lag_plot(series: Series, lag: int = 1, ax: Axes | None = None, **kwds) -> Axes: + # workaround because `c='b'` is hardcoded in matplotlib's scatter method + import matplotlib.pyplot as plt + + kwds.setdefault("c", plt.rcParams["patch.facecolor"]) + + data = series.values + y1 = data[:-lag] + y2 = data[lag:] + if ax is None: + ax = plt.gca() + ax.set_xlabel("y(t)") + ax.set_ylabel(f"y(t + {lag})") + ax.scatter(y1, y2, **kwds) + return ax + + +def autocorrelation_plot(series: Series, ax: Axes | None = None, **kwds) -> Axes: + import matplotlib.pyplot as plt + + n = len(series) + data = np.asarray(series) + if ax is None: + ax = plt.gca() + ax.set_xlim(1, n) + ax.set_ylim(-1.0, 1.0) + mean = np.mean(data) + c0 = np.sum((data - mean) ** 2) / n + + def r(h): + return ((data[: n - h] - mean) * (data[h:] - mean)).sum() / n / c0 + + x = np.arange(n) + 1 + y = [r(loc) for loc in x] + z95 = 1.959963984540054 + z99 = 2.5758293035489004 + ax.axhline(y=z99 / np.sqrt(n), linestyle="--", color="grey") + ax.axhline(y=z95 / np.sqrt(n), color="grey") + ax.axhline(y=0.0, color="black") + ax.axhline(y=-z95 / np.sqrt(n), color="grey") + ax.axhline(y=-z99 / np.sqrt(n), linestyle="--", color="grey") + ax.set_xlabel("Lag") + ax.set_ylabel("Autocorrelation") + ax.plot(x, y, **kwds) + if "label" in kwds: + ax.legend() + ax.grid() + return ax + + +def unpack_single_str_list(keys): + # GH 42795 + if isinstance(keys, list) and len(keys) == 1: + keys = keys[0] + return keys diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/style.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/style.py new file mode 100644 index 0000000000000000000000000000000000000000..bf4e4be3bfd82e6ce89d526aa0da555f67b9f565 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/style.py @@ -0,0 +1,278 @@ +from __future__ import annotations + +from collections.abc import ( + Collection, + Iterator, +) +import itertools +from typing import ( + TYPE_CHECKING, + cast, +) +import warnings + +import matplotlib as mpl +import matplotlib.colors +import numpy as np + +from pandas._typing import MatplotlibColor as Color +from pandas.util._exceptions import find_stack_level + +from pandas.core.dtypes.common import is_list_like + +import pandas.core.common as com + +if TYPE_CHECKING: + from matplotlib.colors import Colormap + + +def get_standard_colors( + num_colors: int, + colormap: Colormap | None = None, + color_type: str = "default", + color: dict[str, Color] | Color | Collection[Color] | None = None, +): + """ + Get standard colors based on `colormap`, `color_type` or `color` inputs. + + Parameters + ---------- + num_colors : int + Minimum number of colors to be returned. + Ignored if `color` is a dictionary. + colormap : :py:class:`matplotlib.colors.Colormap`, optional + Matplotlib colormap. + When provided, the resulting colors will be derived from the colormap. + color_type : {"default", "random"}, optional + Type of colors to derive. Used if provided `color` and `colormap` are None. + Ignored if either `color` or `colormap` are not None. + color : dict or str or sequence, optional + Color(s) to be used for deriving sequence of colors. + Can be either be a dictionary, or a single color (single color string, + or sequence of floats representing a single color), + or a sequence of colors. + + Returns + ------- + dict or list + Standard colors. Can either be a mapping if `color` was a dictionary, + or a list of colors with a length of `num_colors` or more. + + Warns + ----- + UserWarning + If both `colormap` and `color` are provided. + Parameter `color` will override. + """ + if isinstance(color, dict): + return color + + colors = _derive_colors( + color=color, + colormap=colormap, + color_type=color_type, + num_colors=num_colors, + ) + + return list(_cycle_colors(colors, num_colors=num_colors)) + + +def _derive_colors( + *, + color: Color | Collection[Color] | None, + colormap: str | Colormap | None, + color_type: str, + num_colors: int, +) -> list[Color]: + """ + Derive colors from either `colormap`, `color_type` or `color` inputs. + + Get a list of colors either from `colormap`, or from `color`, + or from `color_type` (if both `colormap` and `color` are None). + + Parameters + ---------- + color : str or sequence, optional + Color(s) to be used for deriving sequence of colors. + Can be either be a single color (single color string, or sequence of floats + representing a single color), or a sequence of colors. + colormap : :py:class:`matplotlib.colors.Colormap`, optional + Matplotlib colormap. + When provided, the resulting colors will be derived from the colormap. + color_type : {"default", "random"}, optional + Type of colors to derive. Used if provided `color` and `colormap` are None. + Ignored if either `color` or `colormap`` are not None. + num_colors : int + Number of colors to be extracted. + + Returns + ------- + list + List of colors extracted. + + Warns + ----- + UserWarning + If both `colormap` and `color` are provided. + Parameter `color` will override. + """ + if color is None and colormap is not None: + return _get_colors_from_colormap(colormap, num_colors=num_colors) + elif color is not None: + if colormap is not None: + warnings.warn( + "'color' and 'colormap' cannot be used simultaneously. Using 'color'", + stacklevel=find_stack_level(), + ) + return _get_colors_from_color(color) + else: + return _get_colors_from_color_type(color_type, num_colors=num_colors) + + +def _cycle_colors(colors: list[Color], num_colors: int) -> Iterator[Color]: + """Cycle colors until achieving max of `num_colors` or length of `colors`. + + Extra colors will be ignored by matplotlib if there are more colors + than needed and nothing needs to be done here. + """ + max_colors = max(num_colors, len(colors)) + yield from itertools.islice(itertools.cycle(colors), max_colors) + + +def _get_colors_from_colormap( + colormap: str | Colormap, + num_colors: int, +) -> list[Color]: + """Get colors from colormap.""" + cmap = _get_cmap_instance(colormap) + return [cmap(num) for num in np.linspace(0, 1, num=num_colors)] + + +def _get_cmap_instance(colormap: str | Colormap) -> Colormap: + """Get instance of matplotlib colormap.""" + if isinstance(colormap, str): + cmap = colormap + colormap = mpl.colormaps[colormap] + if colormap is None: + raise ValueError(f"Colormap {cmap} is not recognized") + return colormap + + +def _get_colors_from_color( + color: Color | Collection[Color], +) -> list[Color]: + """Get colors from user input color.""" + if len(color) == 0: + raise ValueError(f"Invalid color argument: {color}") + + if _is_single_color(color): + color = cast(Color, color) + return [color] + + color = cast(Collection[Color], color) + return list(_gen_list_of_colors_from_iterable(color)) + + +def _is_single_color(color: Color | Collection[Color]) -> bool: + """Check if `color` is a single color, not a sequence of colors. + + Single color is of these kinds: + - Named color "red", "C0", "firebrick" + - Alias "g" + - Sequence of floats, such as (0.1, 0.2, 0.3) or (0.1, 0.2, 0.3, 0.4). + + See Also + -------- + _is_single_string_color + """ + if isinstance(color, str) and _is_single_string_color(color): + # GH #36972 + return True + + if _is_floats_color(color): + return True + + return False + + +def _gen_list_of_colors_from_iterable(color: Collection[Color]) -> Iterator[Color]: + """ + Yield colors from string of several letters or from collection of colors. + """ + for x in color: + if _is_single_color(x): + yield x + else: + raise ValueError(f"Invalid color {x}") + + +def _is_floats_color(color: Color | Collection[Color]) -> bool: + """Check if color comprises a sequence of floats representing color.""" + return bool( + is_list_like(color) + and (len(color) == 3 or len(color) == 4) + and all(isinstance(x, (int, float)) for x in color) + ) + + +def _get_colors_from_color_type(color_type: str, num_colors: int) -> list[Color]: + """Get colors from user input color type.""" + if color_type == "default": + return _get_default_colors(num_colors) + elif color_type == "random": + return _get_random_colors(num_colors) + else: + raise ValueError("color_type must be either 'default' or 'random'") + + +def _get_default_colors(num_colors: int) -> list[Color]: + """Get `num_colors` of default colors from matplotlib rc params.""" + import matplotlib.pyplot as plt + + colors = [c["color"] for c in plt.rcParams["axes.prop_cycle"]] + return colors[0:num_colors] + + +def _get_random_colors(num_colors: int) -> list[Color]: + """Get `num_colors` of random colors.""" + return [_random_color(num) for num in range(num_colors)] + + +def _random_color(column: int) -> list[float]: + """Get a random color represented as a list of length 3""" + # GH17525 use common._random_state to avoid resetting the seed + rs = com.random_state(column) + return rs.rand(3).tolist() + + +def _is_single_string_color(color: Color) -> bool: + """Check if `color` is a single string color. + + Examples of single string colors: + - 'r' + - 'g' + - 'red' + - 'green' + - 'C3' + - 'firebrick' + + Parameters + ---------- + color : Color + Color string or sequence of floats. + + Returns + ------- + bool + True if `color` looks like a valid color. + False otherwise. + """ + conv = matplotlib.colors.ColorConverter() + try: + # error: Argument 1 to "to_rgba" of "ColorConverter" has incompatible type + # "str | Sequence[float]"; expected "tuple[float, float, float] | ..." + conv.to_rgba(color) # type: ignore[arg-type] + except ValueError: + return False + else: + return True diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/timeseries.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/timeseries.py new file mode 100644 index 0000000000000000000000000000000000000000..accf418526d9be36f6c613ebad312109727648de --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/timeseries.py @@ -0,0 +1,367 @@ +# TODO: Use the fact that axis can have units to simplify the process + +from __future__ import annotations + +import functools +from typing import ( + TYPE_CHECKING, + Any, + cast, +) +import warnings + +import numpy as np + +from pandas._libs.tslibs import ( + BaseOffset, + Period, + to_offset, +) +from pandas._libs.tslibs.dtypes import ( + OFFSET_TO_PERIOD_FREQSTR, + FreqGroup, +) + +from pandas.core.dtypes.generic import ( + ABCDatetimeIndex, + ABCPeriodIndex, + ABCTimedeltaIndex, +) + +from pandas.io.formats.printing import pprint_thing +from pandas.plotting._matplotlib.converter import ( + TimeSeries_DateFormatter, + TimeSeries_DateLocator, + TimeSeries_TimedeltaFormatter, +) +from pandas.tseries.frequencies import ( + get_period_alias, + is_subperiod, + is_superperiod, +) + +if TYPE_CHECKING: + from datetime import timedelta + + from matplotlib.axes import Axes + + from pandas._typing import NDFrameT + + from pandas import ( + DataFrame, + DatetimeIndex, + Index, + PeriodIndex, + Series, + ) + +# --------------------------------------------------------------------- +# Plotting functions and monkey patches + + +def maybe_resample(series: Series, ax: Axes, kwargs: dict[str, Any]): + # resample against axes freq if necessary + + if "how" in kwargs: + raise ValueError( + "'how' is not a valid keyword for plotting functions. If plotting " + "multiple objects on shared axes, resample manually first." + ) + + freq, ax_freq = _get_freq(ax, series) + + if freq is None: # pragma: no cover + raise ValueError("Cannot use dynamic axis without frequency info") + + # Convert DatetimeIndex to PeriodIndex + if isinstance(series.index, ABCDatetimeIndex): + series = series.to_period(freq=freq) + + if ax_freq is not None and freq != ax_freq: + if is_superperiod(freq, ax_freq): # upsample input + series = series.copy() + # error: "Index" has no attribute "asfreq" + series.index = series.index.asfreq( # type: ignore[attr-defined] + ax_freq, how="s" + ) + freq = ax_freq + elif _is_sup(freq, ax_freq): # one is weekly + how = "last" + series = getattr(series.resample("D"), how)().dropna() + series = getattr(series.resample(ax_freq), how)().dropna() + freq = ax_freq + elif is_subperiod(freq, ax_freq) or _is_sub(freq, ax_freq): + _upsample_others(ax, freq, kwargs) + else: # pragma: no cover + raise ValueError("Incompatible frequency conversion") + return freq, series + + +def _is_sub(f1: str, f2: str) -> bool: + return (f1.startswith("W") and is_subperiod("D", f2)) or ( + f2.startswith("W") and is_subperiod(f1, "D") + ) + + +def _is_sup(f1: str, f2: str) -> bool: + return (f1.startswith("W") and is_superperiod("D", f2)) or ( + f2.startswith("W") and is_superperiod(f1, "D") + ) + + +def _upsample_others(ax: Axes, freq: BaseOffset, kwargs: dict[str, Any]) -> None: + legend = ax.get_legend() + lines, labels = _replot_ax(ax, freq) + _replot_ax(ax, freq) + + other_ax = None + if hasattr(ax, "left_ax"): + other_ax = ax.left_ax + if hasattr(ax, "right_ax"): + other_ax = ax.right_ax + + if other_ax is not None: + rlines, rlabels = _replot_ax(other_ax, freq) + lines.extend(rlines) + labels.extend(rlabels) + + if legend is not None and kwargs.get("legend", True) and len(lines) > 0: + title: str | None = legend.get_title().get_text() + if title == "None": + title = None + ax.legend(lines, labels, loc="best", title=title) + + +def _replot_ax(ax: Axes, freq: BaseOffset): + data = getattr(ax, "_plot_data", None) + + # clear current axes and data + # TODO #54485 + ax._plot_data = [] # type: ignore[attr-defined] + ax.clear() + + decorate_axes(ax, freq) + + lines = [] + labels = [] + if data is not None: + for series, plotf, kwds in data: + series = series.copy() + idx = series.index.asfreq(freq, how="S") + series.index = idx + # TODO #54485 + ax._plot_data.append((series, plotf, kwds)) # type: ignore[attr-defined] + + # for tsplot + if isinstance(plotf, str): + from pandas.plotting._matplotlib import PLOT_CLASSES + + plotf = PLOT_CLASSES[plotf]._plot + + lines.append(plotf(ax, series.index._mpl_repr(), series.values, **kwds)[0]) + labels.append(pprint_thing(series.name)) + + return lines, labels + + +def decorate_axes(ax: Axes, freq: BaseOffset) -> None: + """Initialize axes for time-series plotting""" + if not hasattr(ax, "_plot_data"): + # TODO #54485 + ax._plot_data = [] # type: ignore[attr-defined] + + # TODO #54485 + ax.freq = freq # type: ignore[attr-defined] + xaxis = ax.get_xaxis() + # TODO #54485 + xaxis.freq = freq # type: ignore[attr-defined] + + +def _get_ax_freq(ax: Axes): + """ + Get the freq attribute of the ax object if set. + Also checks shared axes (eg when using secondary yaxis, sharex=True + or twinx) + """ + ax_freq = getattr(ax, "freq", None) + if ax_freq is None: + # check for left/right ax in case of secondary yaxis + if hasattr(ax, "left_ax"): + ax_freq = getattr(ax.left_ax, "freq", None) + elif hasattr(ax, "right_ax"): + ax_freq = getattr(ax.right_ax, "freq", None) + if ax_freq is None: + # check if a shared ax (sharex/twinx) has already freq set + shared_axes = ax.get_shared_x_axes().get_siblings(ax) + if len(shared_axes) > 1: + for shared_ax in shared_axes: + ax_freq = getattr(shared_ax, "freq", None) + if ax_freq is not None: + break + return ax_freq + + +def _get_period_alias(freq: timedelta | BaseOffset | str) -> str | None: + if isinstance(freq, BaseOffset): + freqstr = freq.name + else: + freqstr = to_offset(freq, is_period=True).rule_code + + return get_period_alias(freqstr) + + +def _get_freq(ax: Axes, series: Series): + # get frequency from data + freq = getattr(series.index, "freq", None) + if freq is None: + freq = getattr(series.index, "inferred_freq", None) + freq = to_offset(freq, is_period=True) + + ax_freq = _get_ax_freq(ax) + + # use axes freq if no data freq + if freq is None: + freq = ax_freq + + # get the period frequency + freq = _get_period_alias(freq) + return freq, ax_freq + + +def use_dynamic_x(ax: Axes, data: DataFrame | Series) -> bool: + freq = _get_index_freq(data.index) + ax_freq = _get_ax_freq(ax) + + if freq is None: # convert irregular if axes has freq info + freq = ax_freq + # do not use tsplot if irregular was plotted first + elif (ax_freq is None) and (len(ax.get_lines()) > 0): + return False + + if freq is None: + return False + + freq_str = _get_period_alias(freq) + + if freq_str is None: + return False + + # FIXME: hack this for 0.10.1, creating more technical debt...sigh + if isinstance(data.index, ABCDatetimeIndex): + # error: "BaseOffset" has no attribute "_period_dtype_code" + freq_str = OFFSET_TO_PERIOD_FREQSTR.get(freq_str, freq_str) + base = to_offset( + freq_str, is_period=True + )._period_dtype_code # type: ignore[attr-defined] + x = data.index + if base <= FreqGroup.FR_DAY.value: + return x[:1].is_normalized + period = Period(x[0], freq_str) + assert isinstance(period, Period) + return period.to_timestamp().tz_localize(x.tz) == x[0] + return True + + +def _get_index_freq(index: Index) -> BaseOffset | None: + freq = getattr(index, "freq", None) + if freq is None: + freq = getattr(index, "inferred_freq", None) + if freq == "B": + # error: "Index" has no attribute "dayofweek" + weekdays = np.unique(index.dayofweek) # type: ignore[attr-defined] + if (5 in weekdays) or (6 in weekdays): + freq = None + + freq = to_offset(freq) + return freq + + +def maybe_convert_index(ax: Axes, data: NDFrameT) -> NDFrameT: + # tsplot converts automatically, but don't want to convert index + # over and over for DataFrames + if isinstance(data.index, (ABCDatetimeIndex, ABCPeriodIndex)): + freq: str | BaseOffset | None = data.index.freq + + if freq is None: + # We only get here for DatetimeIndex + data.index = cast("DatetimeIndex", data.index) + freq = data.index.inferred_freq + freq = to_offset(freq) + + if freq is None: + freq = _get_ax_freq(ax) + + if freq is None: + raise ValueError("Could not get frequency alias for plotting") + + freq_str = _get_period_alias(freq) + + with warnings.catch_warnings(): + # suppress Period[B] deprecation warning + # TODO: need to find an alternative to this before the deprecation + # is enforced! + warnings.filterwarnings( + "ignore", + r"PeriodDtype\[B\] is deprecated", + category=FutureWarning, + ) + + if isinstance(data.index, ABCDatetimeIndex): + data = data.tz_localize(None).to_period(freq=freq_str) + elif isinstance(data.index, ABCPeriodIndex): + data.index = data.index.asfreq(freq=freq_str) + return data + + +# Patch methods for subplot. + + +def _format_coord(freq, t, y) -> str: + time_period = Period(ordinal=int(t), freq=freq) + return f"t = {time_period} y = {y:8f}" + + +def format_dateaxis( + subplot, freq: BaseOffset, index: DatetimeIndex | PeriodIndex +) -> None: + """ + Pretty-formats the date axis (x-axis). + + Major and minor ticks are automatically set for the frequency of the + current underlying series. As the dynamic mode is activated by + default, changing the limits of the x axis will intelligently change + the positions of the ticks. + """ + from matplotlib import pylab + + # handle index specific formatting + # Note: DatetimeIndex does not use this + # interface. DatetimeIndex uses matplotlib.date directly + if isinstance(index, ABCPeriodIndex): + majlocator = TimeSeries_DateLocator( + freq, dynamic_mode=True, minor_locator=False, plot_obj=subplot + ) + minlocator = TimeSeries_DateLocator( + freq, dynamic_mode=True, minor_locator=True, plot_obj=subplot + ) + subplot.xaxis.set_major_locator(majlocator) + subplot.xaxis.set_minor_locator(minlocator) + + majformatter = TimeSeries_DateFormatter( + freq, dynamic_mode=True, minor_locator=False, plot_obj=subplot + ) + minformatter = TimeSeries_DateFormatter( + freq, dynamic_mode=True, minor_locator=True, plot_obj=subplot + ) + subplot.xaxis.set_major_formatter(majformatter) + subplot.xaxis.set_minor_formatter(minformatter) + + # x and y coord info + subplot.format_coord = functools.partial(_format_coord, freq) + + elif isinstance(index, ABCTimedeltaIndex): + subplot.xaxis.set_major_formatter(TimeSeries_TimedeltaFormatter()) + else: + raise TypeError("index type not supported") + + pylab.draw_if_interactive() diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/tools.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/tools.py new file mode 100644 index 0000000000000000000000000000000000000000..98441c5afbaa47bfdfd7db27f33ef91c90332088 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_matplotlib/tools.py @@ -0,0 +1,492 @@ +# being a bit too dynamic +from __future__ import annotations + +from math import ceil +from typing import TYPE_CHECKING +import warnings + +from matplotlib import ticker +import matplotlib.table +import numpy as np + +from pandas.util._exceptions import find_stack_level + +from pandas.core.dtypes.common import is_list_like +from pandas.core.dtypes.generic import ( + ABCDataFrame, + ABCIndex, + ABCSeries, +) + +if TYPE_CHECKING: + from collections.abc import ( + Iterable, + Sequence, + ) + + from matplotlib.axes import Axes + from matplotlib.axis import Axis + from matplotlib.figure import Figure + from matplotlib.lines import Line2D + from matplotlib.table import Table + + from pandas import ( + DataFrame, + Series, + ) + + +def do_adjust_figure(fig: Figure) -> bool: + """Whether fig has constrained_layout enabled.""" + if not hasattr(fig, "get_constrained_layout"): + return False + return not fig.get_constrained_layout() + + +def maybe_adjust_figure(fig: Figure, *args, **kwargs) -> None: + """Call fig.subplots_adjust unless fig has constrained_layout enabled.""" + if do_adjust_figure(fig): + fig.subplots_adjust(*args, **kwargs) + + +def format_date_labels(ax: Axes, rot) -> None: + # mini version of autofmt_xdate + for label in ax.get_xticklabels(): + label.set_horizontalalignment("right") + label.set_rotation(rot) + fig = ax.get_figure() + if fig is not None: + # should always be a Figure but can technically be None + maybe_adjust_figure(fig, bottom=0.2) # type: ignore[arg-type] + + +def table( + ax, data: DataFrame | Series, rowLabels=None, colLabels=None, **kwargs +) -> Table: + if isinstance(data, ABCSeries): + data = data.to_frame() + elif isinstance(data, ABCDataFrame): + pass + else: + raise ValueError("Input data must be DataFrame or Series") + + if rowLabels is None: + rowLabels = data.index + + if colLabels is None: + colLabels = data.columns + + cellText = data.values + + # error: Argument "cellText" to "table" has incompatible type "ndarray[Any, + # Any]"; expected "Sequence[Sequence[str]] | None" + return matplotlib.table.table( + ax, + cellText=cellText, # type: ignore[arg-type] + rowLabels=rowLabels, + colLabels=colLabels, + **kwargs, + ) + + +def _get_layout( + nplots: int, + layout: tuple[int, int] | None = None, + layout_type: str = "box", +) -> tuple[int, int]: + if layout is not None: + if not isinstance(layout, (tuple, list)) or len(layout) != 2: + raise ValueError("Layout must be a tuple of (rows, columns)") + + nrows, ncols = layout + + if nrows == -1 and ncols > 0: + layout = nrows, ncols = (ceil(nplots / ncols), ncols) + elif ncols == -1 and nrows > 0: + layout = nrows, ncols = (nrows, ceil(nplots / nrows)) + elif ncols <= 0 and nrows <= 0: + msg = "At least one dimension of layout must be positive" + raise ValueError(msg) + + if nrows * ncols < nplots: + raise ValueError( + f"Layout of {nrows}x{ncols} must be larger than required size {nplots}" + ) + + return layout + + if layout_type == "single": + return (1, 1) + elif layout_type == "horizontal": + return (1, nplots) + elif layout_type == "vertical": + return (nplots, 1) + + layouts = {1: (1, 1), 2: (1, 2), 3: (2, 2), 4: (2, 2)} + try: + return layouts[nplots] + except KeyError: + k = 1 + while k**2 < nplots: + k += 1 + + if (k - 1) * k >= nplots: + return k, (k - 1) + else: + return k, k + + +# copied from matplotlib/pyplot.py and modified for pandas.plotting + + +def create_subplots( + naxes: int, + sharex: bool = False, + sharey: bool = False, + squeeze: bool = True, + subplot_kw=None, + ax=None, + layout=None, + layout_type: str = "box", + **fig_kw, +): + """ + Create a figure with a set of subplots already made. + + This utility wrapper makes it convenient to create common layouts of + subplots, including the enclosing figure object, in a single call. + + Parameters + ---------- + naxes : int + Number of required axes. Exceeded axes are set invisible. Default is + nrows * ncols. + + sharex : bool + If True, the X axis will be shared amongst all subplots. + + sharey : bool + If True, the Y axis will be shared amongst all subplots. + + squeeze : bool + + If True, extra dimensions are squeezed out from the returned axis object: + - if only one subplot is constructed (nrows=ncols=1), the resulting + single Axis object is returned as a scalar. + - for Nx1 or 1xN subplots, the returned object is a 1-d numpy object + array of Axis objects are returned as numpy 1-d arrays. + - for NxM subplots with N>1 and M>1 are returned as a 2d array. + + If False, no squeezing is done: the returned axis object is always + a 2-d array containing Axis instances, even if it ends up being 1x1. + + subplot_kw : dict + Dict with keywords passed to the add_subplot() call used to create each + subplots. + + ax : Matplotlib axis object, optional + + layout : tuple + Number of rows and columns of the subplot grid. + If not specified, calculated from naxes and layout_type + + layout_type : {'box', 'horizontal', 'vertical'}, default 'box' + Specify how to layout the subplot grid. + + fig_kw : Other keyword arguments to be passed to the figure() call. + Note that all keywords not recognized above will be + automatically included here. + + Returns + ------- + fig, ax : tuple + - fig is the Matplotlib Figure object + - ax can be either a single axis object or an array of axis objects if + more than one subplot was created. The dimensions of the resulting array + can be controlled with the squeeze keyword, see above. + + Examples + -------- + x = np.linspace(0, 2*np.pi, 400) + y = np.sin(x**2) + + # Just a figure and one subplot + f, ax = plt.subplots() + ax.plot(x, y) + ax.set_title('Simple plot') + + # Two subplots, unpack the output array immediately + f, (ax1, ax2) = plt.subplots(1, 2, sharey=True) + ax1.plot(x, y) + ax1.set_title('Sharing Y axis') + ax2.scatter(x, y) + + # Four polar axes + plt.subplots(2, 2, subplot_kw=dict(polar=True)) + """ + import matplotlib.pyplot as plt + + if subplot_kw is None: + subplot_kw = {} + + if ax is None: + fig = plt.figure(**fig_kw) + else: + if is_list_like(ax): + if squeeze: + ax = flatten_axes(ax) + if layout is not None: + warnings.warn( + "When passing multiple axes, layout keyword is ignored.", + UserWarning, + stacklevel=find_stack_level(), + ) + if sharex or sharey: + warnings.warn( + "When passing multiple axes, sharex and sharey " + "are ignored. These settings must be specified when creating axes.", + UserWarning, + stacklevel=find_stack_level(), + ) + if ax.size == naxes: + fig = ax.flat[0].get_figure() + return fig, ax + else: + raise ValueError( + f"The number of passed axes must be {naxes}, the " + "same as the output plot" + ) + + fig = ax.get_figure() + # if ax is passed and a number of subplots is 1, return ax as it is + if naxes == 1: + if squeeze: + return fig, ax + else: + return fig, flatten_axes(ax) + else: + warnings.warn( + "To output multiple subplots, the figure containing " + "the passed axes is being cleared.", + UserWarning, + stacklevel=find_stack_level(), + ) + fig.clear() + + nrows, ncols = _get_layout(naxes, layout=layout, layout_type=layout_type) + nplots = nrows * ncols + + # Create empty object array to hold all axes. It's easiest to make it 1-d + # so we can just append subplots upon creation, and then + axarr = np.empty(nplots, dtype=object) + + # Create first subplot separately, so we can share it if requested + ax0 = fig.add_subplot(nrows, ncols, 1, **subplot_kw) + + if sharex: + subplot_kw["sharex"] = ax0 + if sharey: + subplot_kw["sharey"] = ax0 + axarr[0] = ax0 + + # Note off-by-one counting because add_subplot uses the MATLAB 1-based + # convention. + for i in range(1, nplots): + kwds = subplot_kw.copy() + # Set sharex and sharey to None for blank/dummy axes, these can + # interfere with proper axis limits on the visible axes if + # they share axes e.g. issue #7528 + if i >= naxes: + kwds["sharex"] = None + kwds["sharey"] = None + ax = fig.add_subplot(nrows, ncols, i + 1, **kwds) + axarr[i] = ax + + if naxes != nplots: + for ax in axarr[naxes:]: + ax.set_visible(False) + + handle_shared_axes(axarr, nplots, naxes, nrows, ncols, sharex, sharey) + + if squeeze: + # Reshape the array to have the final desired dimension (nrow,ncol), + # though discarding unneeded dimensions that equal 1. If we only have + # one subplot, just return it instead of a 1-element array. + if nplots == 1: + axes = axarr[0] + else: + axes = axarr.reshape(nrows, ncols).squeeze() + else: + # returned axis array will be always 2-d, even if nrows=ncols=1 + axes = axarr.reshape(nrows, ncols) + + return fig, axes + + +def _remove_labels_from_axis(axis: Axis) -> None: + for t in axis.get_majorticklabels(): + t.set_visible(False) + + # set_visible will not be effective if + # minor axis has NullLocator and NullFormatter (default) + if isinstance(axis.get_minor_locator(), ticker.NullLocator): + axis.set_minor_locator(ticker.AutoLocator()) + if isinstance(axis.get_minor_formatter(), ticker.NullFormatter): + axis.set_minor_formatter(ticker.FormatStrFormatter("")) + for t in axis.get_minorticklabels(): + t.set_visible(False) + + axis.get_label().set_visible(False) + + +def _has_externally_shared_axis(ax1: Axes, compare_axis: str) -> bool: + """ + Return whether an axis is externally shared. + + Parameters + ---------- + ax1 : matplotlib.axes.Axes + Axis to query. + compare_axis : str + `"x"` or `"y"` according to whether the X-axis or Y-axis is being + compared. + + Returns + ------- + bool + `True` if the axis is externally shared. Otherwise `False`. + + Notes + ----- + If two axes with different positions are sharing an axis, they can be + referred to as *externally* sharing the common axis. + + If two axes sharing an axis also have the same position, they can be + referred to as *internally* sharing the common axis (a.k.a twinning). + + _handle_shared_axes() is only interested in axes externally sharing an + axis, regardless of whether either of the axes is also internally sharing + with a third axis. + """ + if compare_axis == "x": + axes = ax1.get_shared_x_axes() + elif compare_axis == "y": + axes = ax1.get_shared_y_axes() + else: + raise ValueError( + "_has_externally_shared_axis() needs 'x' or 'y' as a second parameter" + ) + + axes_siblings = axes.get_siblings(ax1) + + # Retain ax1 and any of its siblings which aren't in the same position as it + ax1_points = ax1.get_position().get_points() + + for ax2 in axes_siblings: + if not np.array_equal(ax1_points, ax2.get_position().get_points()): + return True + + return False + + +def handle_shared_axes( + axarr: Iterable[Axes], + nplots: int, + naxes: int, + nrows: int, + ncols: int, + sharex: bool, + sharey: bool, +) -> None: + if nplots > 1: + row_num = lambda x: x.get_subplotspec().rowspan.start + col_num = lambda x: x.get_subplotspec().colspan.start + + is_first_col = lambda x: x.get_subplotspec().is_first_col() + + if nrows > 1: + try: + # first find out the ax layout, + # so that we can correctly handle 'gaps" + layout = np.zeros((nrows + 1, ncols + 1), dtype=np.bool_) + for ax in axarr: + layout[row_num(ax), col_num(ax)] = ax.get_visible() + + for ax in axarr: + # only the last row of subplots should get x labels -> all + # other off layout handles the case that the subplot is + # the last in the column, because below is no subplot/gap. + if not layout[row_num(ax) + 1, col_num(ax)]: + continue + if sharex or _has_externally_shared_axis(ax, "x"): + _remove_labels_from_axis(ax.xaxis) + + except IndexError: + # if gridspec is used, ax.rowNum and ax.colNum may different + # from layout shape. in this case, use last_row logic + is_last_row = lambda x: x.get_subplotspec().is_last_row() + for ax in axarr: + if is_last_row(ax): + continue + if sharex or _has_externally_shared_axis(ax, "x"): + _remove_labels_from_axis(ax.xaxis) + + if ncols > 1: + for ax in axarr: + # only the first column should get y labels -> set all other to + # off as we only have labels in the first column and we always + # have a subplot there, we can skip the layout test + if is_first_col(ax): + continue + if sharey or _has_externally_shared_axis(ax, "y"): + _remove_labels_from_axis(ax.yaxis) + + +def flatten_axes(axes: Axes | Sequence[Axes]) -> np.ndarray: + if not is_list_like(axes): + return np.array([axes]) + elif isinstance(axes, (np.ndarray, ABCIndex)): + return np.asarray(axes).ravel() + return np.array(axes) + + +def set_ticks_props( + axes: Axes | Sequence[Axes], + xlabelsize: int | None = None, + xrot=None, + ylabelsize: int | None = None, + yrot=None, +): + import matplotlib.pyplot as plt + + for ax in flatten_axes(axes): + if xlabelsize is not None: + plt.setp(ax.get_xticklabels(), fontsize=xlabelsize) + if xrot is not None: + plt.setp(ax.get_xticklabels(), rotation=xrot) + if ylabelsize is not None: + plt.setp(ax.get_yticklabels(), fontsize=ylabelsize) + if yrot is not None: + plt.setp(ax.get_yticklabels(), rotation=yrot) + return axes + + +def get_all_lines(ax: Axes) -> list[Line2D]: + lines = ax.get_lines() + + if hasattr(ax, "right_ax"): + lines += ax.right_ax.get_lines() + + if hasattr(ax, "left_ax"): + lines += ax.left_ax.get_lines() + + return lines + + +def get_xlim(lines: Iterable[Line2D]) -> tuple[float, float]: + left, right = np.inf, -np.inf + for line in lines: + x = line.get_xdata(orig=False) + left = min(np.nanmin(x), left) + right = max(np.nanmax(x), right) + return left, right diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_misc.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_misc.py new file mode 100644 index 0000000000000000000000000000000000000000..18db460d388a4b748f91282ae42875206ba36cc6 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/plotting/_misc.py @@ -0,0 +1,688 @@ +from __future__ import annotations + +from contextlib import contextmanager +from typing import ( + TYPE_CHECKING, + Any, +) + +from pandas.plotting._core import _get_plot_backend + +if TYPE_CHECKING: + from collections.abc import ( + Generator, + Mapping, + ) + + from matplotlib.axes import Axes + from matplotlib.colors import Colormap + from matplotlib.figure import Figure + from matplotlib.table import Table + import numpy as np + + from pandas import ( + DataFrame, + Series, + ) + + +def table(ax: Axes, data: DataFrame | Series, **kwargs) -> Table: + """ + Helper function to convert DataFrame and Series to matplotlib.table. + + Parameters + ---------- + ax : Matplotlib axes object + data : DataFrame or Series + Data for table contents. + **kwargs + Keyword arguments to be passed to matplotlib.table.table. + If `rowLabels` or `colLabels` is not specified, data index or column + name will be used. + + Returns + ------- + matplotlib table object + + Examples + -------- + + .. plot:: + :context: close-figs + + >>> import matplotlib.pyplot as plt + >>> df = pd.DataFrame({'A': [1, 2], 'B': [3, 4]}) + >>> fix, ax = plt.subplots() + >>> ax.axis('off') + (0.0, 1.0, 0.0, 1.0) + >>> table = pd.plotting.table(ax, df, loc='center', + ... cellLoc='center', colWidths=list([.2, .2])) + """ + plot_backend = _get_plot_backend("matplotlib") + return plot_backend.table( + ax=ax, data=data, rowLabels=None, colLabels=None, **kwargs + ) + + +def register() -> None: + """ + Register pandas formatters and converters with matplotlib. + + This function modifies the global ``matplotlib.units.registry`` + dictionary. pandas adds custom converters for + + * pd.Timestamp + * pd.Period + * np.datetime64 + * datetime.datetime + * datetime.date + * datetime.time + + See Also + -------- + deregister_matplotlib_converters : Remove pandas formatters and converters. + + Examples + -------- + .. plot:: + :context: close-figs + + The following line is done automatically by pandas so + the plot can be rendered: + + >>> pd.plotting.register_matplotlib_converters() + + >>> df = pd.DataFrame({'ts': pd.period_range('2020', periods=2, freq='M'), + ... 'y': [1, 2] + ... }) + >>> plot = df.plot.line(x='ts', y='y') + + Unsetting the register manually an error will be raised: + + >>> pd.set_option("plotting.matplotlib.register_converters", + ... False) # doctest: +SKIP + >>> df.plot.line(x='ts', y='y') # doctest: +SKIP + Traceback (most recent call last): + TypeError: float() argument must be a string or a real number, not 'Period' + """ + plot_backend = _get_plot_backend("matplotlib") + plot_backend.register() + + +def deregister() -> None: + """ + Remove pandas formatters and converters. + + Removes the custom converters added by :func:`register`. This + attempts to set the state of the registry back to the state before + pandas registered its own units. Converters for pandas' own types like + Timestamp and Period are removed completely. Converters for types + pandas overwrites, like ``datetime.datetime``, are restored to their + original value. + + See Also + -------- + register_matplotlib_converters : Register pandas formatters and converters + with matplotlib. + + Examples + -------- + .. plot:: + :context: close-figs + + The following line is done automatically by pandas so + the plot can be rendered: + + >>> pd.plotting.register_matplotlib_converters() + + >>> df = pd.DataFrame({'ts': pd.period_range('2020', periods=2, freq='M'), + ... 'y': [1, 2] + ... }) + >>> plot = df.plot.line(x='ts', y='y') + + Unsetting the register manually an error will be raised: + + >>> pd.set_option("plotting.matplotlib.register_converters", + ... False) # doctest: +SKIP + >>> df.plot.line(x='ts', y='y') # doctest: +SKIP + Traceback (most recent call last): + TypeError: float() argument must be a string or a real number, not 'Period' + """ + plot_backend = _get_plot_backend("matplotlib") + plot_backend.deregister() + + +def scatter_matrix( + frame: DataFrame, + alpha: float = 0.5, + figsize: tuple[float, float] | None = None, + ax: Axes | None = None, + grid: bool = False, + diagonal: str = "hist", + marker: str = ".", + density_kwds: Mapping[str, Any] | None = None, + hist_kwds: Mapping[str, Any] | None = None, + range_padding: float = 0.05, + **kwargs, +) -> np.ndarray: + """ + Draw a matrix of scatter plots. + + Parameters + ---------- + frame : DataFrame + alpha : float, optional + Amount of transparency applied. + figsize : (float,float), optional + A tuple (width, height) in inches. + ax : Matplotlib axis object, optional + grid : bool, optional + Setting this to True will show the grid. + diagonal : {'hist', 'kde'} + Pick between 'kde' and 'hist' for either Kernel Density Estimation or + Histogram plot in the diagonal. + marker : str, optional + Matplotlib marker type, default '.'. + density_kwds : keywords + Keyword arguments to be passed to kernel density estimate plot. + hist_kwds : keywords + Keyword arguments to be passed to hist function. + range_padding : float, default 0.05 + Relative extension of axis range in x and y with respect to + (x_max - x_min) or (y_max - y_min). + **kwargs + Keyword arguments to be passed to scatter function. + + Returns + ------- + numpy.ndarray + A matrix of scatter plots. + + Examples + -------- + + .. plot:: + :context: close-figs + + >>> df = pd.DataFrame(np.random.randn(1000, 4), columns=['A','B','C','D']) + >>> pd.plotting.scatter_matrix(df, alpha=0.2) + array([[, , + , ], + [, , + , ], + [, , + , ], + [, , + , ]], + dtype=object) + """ + plot_backend = _get_plot_backend("matplotlib") + return plot_backend.scatter_matrix( + frame=frame, + alpha=alpha, + figsize=figsize, + ax=ax, + grid=grid, + diagonal=diagonal, + marker=marker, + density_kwds=density_kwds, + hist_kwds=hist_kwds, + range_padding=range_padding, + **kwargs, + ) + + +def radviz( + frame: DataFrame, + class_column: str, + ax: Axes | None = None, + color: list[str] | tuple[str, ...] | None = None, + colormap: Colormap | str | None = None, + **kwds, +) -> Axes: + """ + Plot a multidimensional dataset in 2D. + + Each Series in the DataFrame is represented as a evenly distributed + slice on a circle. Each data point is rendered in the circle according to + the value on each Series. Highly correlated `Series` in the `DataFrame` + are placed closer on the unit circle. + + RadViz allow to project a N-dimensional data set into a 2D space where the + influence of each dimension can be interpreted as a balance between the + influence of all dimensions. + + More info available at the `original article + `_ + describing RadViz. + + Parameters + ---------- + frame : `DataFrame` + Object holding the data. + class_column : str + Column name containing the name of the data point category. + ax : :class:`matplotlib.axes.Axes`, optional + A plot instance to which to add the information. + color : list[str] or tuple[str], optional + Assign a color to each category. Example: ['blue', 'green']. + colormap : str or :class:`matplotlib.colors.Colormap`, default None + Colormap to select colors from. If string, load colormap with that + name from matplotlib. + **kwds + Options to pass to matplotlib scatter plotting method. + + Returns + ------- + :class:`matplotlib.axes.Axes` + + See Also + -------- + pandas.plotting.andrews_curves : Plot clustering visualization. + + Examples + -------- + + .. plot:: + :context: close-figs + + >>> df = pd.DataFrame( + ... { + ... 'SepalLength': [6.5, 7.7, 5.1, 5.8, 7.6, 5.0, 5.4, 4.6, 6.7, 4.6], + ... 'SepalWidth': [3.0, 3.8, 3.8, 2.7, 3.0, 2.3, 3.0, 3.2, 3.3, 3.6], + ... 'PetalLength': [5.5, 6.7, 1.9, 5.1, 6.6, 3.3, 4.5, 1.4, 5.7, 1.0], + ... 'PetalWidth': [1.8, 2.2, 0.4, 1.9, 2.1, 1.0, 1.5, 0.2, 2.1, 0.2], + ... 'Category': [ + ... 'virginica', + ... 'virginica', + ... 'setosa', + ... 'virginica', + ... 'virginica', + ... 'versicolor', + ... 'versicolor', + ... 'setosa', + ... 'virginica', + ... 'setosa' + ... ] + ... } + ... ) + >>> pd.plotting.radviz(df, 'Category') # doctest: +SKIP + """ + plot_backend = _get_plot_backend("matplotlib") + return plot_backend.radviz( + frame=frame, + class_column=class_column, + ax=ax, + color=color, + colormap=colormap, + **kwds, + ) + + +def andrews_curves( + frame: DataFrame, + class_column: str, + ax: Axes | None = None, + samples: int = 200, + color: list[str] | tuple[str, ...] | None = None, + colormap: Colormap | str | None = None, + **kwargs, +) -> Axes: + """ + Generate a matplotlib plot for visualizing clusters of multivariate data. + + Andrews curves have the functional form: + + .. math:: + f(t) = \\frac{x_1}{\\sqrt{2}} + x_2 \\sin(t) + x_3 \\cos(t) + + x_4 \\sin(2t) + x_5 \\cos(2t) + \\cdots + + Where :math:`x` coefficients correspond to the values of each dimension + and :math:`t` is linearly spaced between :math:`-\\pi` and :math:`+\\pi`. + Each row of frame then corresponds to a single curve. + + Parameters + ---------- + frame : DataFrame + Data to be plotted, preferably normalized to (0.0, 1.0). + class_column : label + Name of the column containing class names. + ax : axes object, default None + Axes to use. + samples : int + Number of points to plot in each curve. + color : str, list[str] or tuple[str], optional + Colors to use for the different classes. Colors can be strings + or 3-element floating point RGB values. + colormap : str or matplotlib colormap object, default None + Colormap to select colors from. If a string, load colormap with that + name from matplotlib. + **kwargs + Options to pass to matplotlib plotting method. + + Returns + ------- + :class:`matplotlib.axes.Axes` + + Examples + -------- + + .. plot:: + :context: close-figs + + >>> df = pd.read_csv( + ... 'https://raw.githubusercontent.com/pandas-dev/' + ... 'pandas/main/pandas/tests/io/data/csv/iris.csv' + ... ) + >>> pd.plotting.andrews_curves(df, 'Name') # doctest: +SKIP + """ + plot_backend = _get_plot_backend("matplotlib") + return plot_backend.andrews_curves( + frame=frame, + class_column=class_column, + ax=ax, + samples=samples, + color=color, + colormap=colormap, + **kwargs, + ) + + +def bootstrap_plot( + series: Series, + fig: Figure | None = None, + size: int = 50, + samples: int = 500, + **kwds, +) -> Figure: + """ + Bootstrap plot on mean, median and mid-range statistics. + + The bootstrap plot is used to estimate the uncertainty of a statistic + by relying on random sampling with replacement [1]_. This function will + generate bootstrapping plots for mean, median and mid-range statistics + for the given number of samples of the given size. + + .. [1] "Bootstrapping (statistics)" in \ + https://en.wikipedia.org/wiki/Bootstrapping_%28statistics%29 + + Parameters + ---------- + series : pandas.Series + Series from where to get the samplings for the bootstrapping. + fig : matplotlib.figure.Figure, default None + If given, it will use the `fig` reference for plotting instead of + creating a new one with default parameters. + size : int, default 50 + Number of data points to consider during each sampling. It must be + less than or equal to the length of the `series`. + samples : int, default 500 + Number of times the bootstrap procedure is performed. + **kwds + Options to pass to matplotlib plotting method. + + Returns + ------- + matplotlib.figure.Figure + Matplotlib figure. + + See Also + -------- + pandas.DataFrame.plot : Basic plotting for DataFrame objects. + pandas.Series.plot : Basic plotting for Series objects. + + Examples + -------- + This example draws a basic bootstrap plot for a Series. + + .. plot:: + :context: close-figs + + >>> s = pd.Series(np.random.uniform(size=100)) + >>> pd.plotting.bootstrap_plot(s) # doctest: +SKIP +
+ """ + plot_backend = _get_plot_backend("matplotlib") + return plot_backend.bootstrap_plot( + series=series, fig=fig, size=size, samples=samples, **kwds + ) + + +def parallel_coordinates( + frame: DataFrame, + class_column: str, + cols: list[str] | None = None, + ax: Axes | None = None, + color: list[str] | tuple[str, ...] | None = None, + use_columns: bool = False, + xticks: list | tuple | None = None, + colormap: Colormap | str | None = None, + axvlines: bool = True, + axvlines_kwds: Mapping[str, Any] | None = None, + sort_labels: bool = False, + **kwargs, +) -> Axes: + """ + Parallel coordinates plotting. + + Parameters + ---------- + frame : DataFrame + class_column : str + Column name containing class names. + cols : list, optional + A list of column names to use. + ax : matplotlib.axis, optional + Matplotlib axis object. + color : list or tuple, optional + Colors to use for the different classes. + use_columns : bool, optional + If true, columns will be used as xticks. + xticks : list or tuple, optional + A list of values to use for xticks. + colormap : str or matplotlib colormap, default None + Colormap to use for line colors. + axvlines : bool, optional + If true, vertical lines will be added at each xtick. + axvlines_kwds : keywords, optional + Options to be passed to axvline method for vertical lines. + sort_labels : bool, default False + Sort class_column labels, useful when assigning colors. + **kwargs + Options to pass to matplotlib plotting method. + + Returns + ------- + matplotlib.axes.Axes + + Examples + -------- + + .. plot:: + :context: close-figs + + >>> df = pd.read_csv( + ... 'https://raw.githubusercontent.com/pandas-dev/' + ... 'pandas/main/pandas/tests/io/data/csv/iris.csv' + ... ) + >>> pd.plotting.parallel_coordinates( + ... df, 'Name', color=('#556270', '#4ECDC4', '#C7F464') + ... ) # doctest: +SKIP + """ + plot_backend = _get_plot_backend("matplotlib") + return plot_backend.parallel_coordinates( + frame=frame, + class_column=class_column, + cols=cols, + ax=ax, + color=color, + use_columns=use_columns, + xticks=xticks, + colormap=colormap, + axvlines=axvlines, + axvlines_kwds=axvlines_kwds, + sort_labels=sort_labels, + **kwargs, + ) + + +def lag_plot(series: Series, lag: int = 1, ax: Axes | None = None, **kwds) -> Axes: + """ + Lag plot for time series. + + Parameters + ---------- + series : Series + The time series to visualize. + lag : int, default 1 + Lag length of the scatter plot. + ax : Matplotlib axis object, optional + The matplotlib axis object to use. + **kwds + Matplotlib scatter method keyword arguments. + + Returns + ------- + matplotlib.axes.Axes + + Examples + -------- + Lag plots are most commonly used to look for patterns in time series data. + + Given the following time series + + .. plot:: + :context: close-figs + + >>> np.random.seed(5) + >>> x = np.cumsum(np.random.normal(loc=1, scale=5, size=50)) + >>> s = pd.Series(x) + >>> s.plot() # doctest: +SKIP + + A lag plot with ``lag=1`` returns + + .. plot:: + :context: close-figs + + >>> pd.plotting.lag_plot(s, lag=1) + + """ + plot_backend = _get_plot_backend("matplotlib") + return plot_backend.lag_plot(series=series, lag=lag, ax=ax, **kwds) + + +def autocorrelation_plot(series: Series, ax: Axes | None = None, **kwargs) -> Axes: + """ + Autocorrelation plot for time series. + + Parameters + ---------- + series : Series + The time series to visualize. + ax : Matplotlib axis object, optional + The matplotlib axis object to use. + **kwargs + Options to pass to matplotlib plotting method. + + Returns + ------- + matplotlib.axes.Axes + + Examples + -------- + The horizontal lines in the plot correspond to 95% and 99% confidence bands. + + The dashed line is 99% confidence band. + + .. plot:: + :context: close-figs + + >>> spacing = np.linspace(-9 * np.pi, 9 * np.pi, num=1000) + >>> s = pd.Series(0.7 * np.random.rand(1000) + 0.3 * np.sin(spacing)) + >>> pd.plotting.autocorrelation_plot(s) # doctest: +SKIP + """ + plot_backend = _get_plot_backend("matplotlib") + return plot_backend.autocorrelation_plot(series=series, ax=ax, **kwargs) + + +class _Options(dict): + """ + Stores pandas plotting options. + + Allows for parameter aliasing so you can just use parameter names that are + the same as the plot function parameters, but is stored in a canonical + format that makes it easy to breakdown into groups later. + + Examples + -------- + + .. plot:: + :context: close-figs + + >>> np.random.seed(42) + >>> df = pd.DataFrame({'A': np.random.randn(10), + ... 'B': np.random.randn(10)}, + ... index=pd.date_range("1/1/2000", + ... freq='4MS', periods=10)) + >>> with pd.plotting.plot_params.use("x_compat", True): + ... _ = df["A"].plot(color="r") + ... _ = df["B"].plot(color="g") + """ + + # alias so the names are same as plotting method parameter names + _ALIASES = {"x_compat": "xaxis.compat"} + _DEFAULT_KEYS = ["xaxis.compat"] + + def __init__(self, deprecated: bool = False) -> None: + self._deprecated = deprecated + super().__setitem__("xaxis.compat", False) + + def __getitem__(self, key): + key = self._get_canonical_key(key) + if key not in self: + raise ValueError(f"{key} is not a valid pandas plotting option") + return super().__getitem__(key) + + def __setitem__(self, key, value) -> None: + key = self._get_canonical_key(key) + super().__setitem__(key, value) + + def __delitem__(self, key) -> None: + key = self._get_canonical_key(key) + if key in self._DEFAULT_KEYS: + raise ValueError(f"Cannot remove default parameter {key}") + super().__delitem__(key) + + def __contains__(self, key) -> bool: + key = self._get_canonical_key(key) + return super().__contains__(key) + + def reset(self) -> None: + """ + Reset the option store to its initial state + + Returns + ------- + None + """ + # error: Cannot access "__init__" directly + self.__init__() # type: ignore[misc] + + def _get_canonical_key(self, key): + return self._ALIASES.get(key, key) + + @contextmanager + def use(self, key, value) -> Generator[_Options, None, None]: + """ + Temporarily set a parameter value using the with statement. + Aliasing allowed. + """ + old_value = self[key] + try: + self[key] = value + yield self + finally: + self[key] = old_value + + +plot_params = _Options() diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/api/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/api/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/api/test_api.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/api/test_api.py new file mode 100644 index 0000000000000000000000000000000000000000..60bcb97aaa3642be064bcacd130edf2084c4a55c --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/api/test_api.py @@ -0,0 +1,383 @@ +from __future__ import annotations + +import pytest + +import pandas as pd +from pandas import api +import pandas._testing as tm +from pandas.api import ( + extensions as api_extensions, + indexers as api_indexers, + interchange as api_interchange, + types as api_types, + typing as api_typing, +) + + +class Base: + def check(self, namespace, expected, ignored=None): + # see which names are in the namespace, minus optional + # ignored ones + # compare vs the expected + + result = sorted( + f for f in dir(namespace) if not f.startswith("__") and f != "annotations" + ) + if ignored is not None: + result = sorted(set(result) - set(ignored)) + + expected = sorted(expected) + tm.assert_almost_equal(result, expected) + + +class TestPDApi(Base): + # these are optionally imported based on testing + # & need to be ignored + ignored = ["tests", "locale", "conftest", "_version_meson"] + + # top-level sub-packages + public_lib = [ + "api", + "arrays", + "options", + "test", + "testing", + "errors", + "plotting", + "io", + "tseries", + ] + private_lib = ["compat", "core", "pandas", "util", "_built_with_meson"] + + # misc + misc = ["IndexSlice", "NaT", "NA"] + + # top-level classes + classes = [ + "ArrowDtype", + "Categorical", + "CategoricalIndex", + "DataFrame", + "DateOffset", + "DatetimeIndex", + "ExcelFile", + "ExcelWriter", + "Flags", + "Grouper", + "HDFStore", + "Index", + "MultiIndex", + "Period", + "PeriodIndex", + "RangeIndex", + "Series", + "SparseDtype", + "StringDtype", + "Timedelta", + "TimedeltaIndex", + "Timestamp", + "Interval", + "IntervalIndex", + "CategoricalDtype", + "PeriodDtype", + "IntervalDtype", + "DatetimeTZDtype", + "BooleanDtype", + "Int8Dtype", + "Int16Dtype", + "Int32Dtype", + "Int64Dtype", + "UInt8Dtype", + "UInt16Dtype", + "UInt32Dtype", + "UInt64Dtype", + "Float32Dtype", + "Float64Dtype", + "NamedAgg", + ] + + # these are already deprecated; awaiting removal + deprecated_classes: list[str] = [] + + # external modules exposed in pandas namespace + modules: list[str] = [] + + # top-level functions + funcs = [ + "array", + "bdate_range", + "concat", + "crosstab", + "cut", + "date_range", + "interval_range", + "eval", + "factorize", + "get_dummies", + "from_dummies", + "infer_freq", + "isna", + "isnull", + "lreshape", + "melt", + "notna", + "notnull", + "offsets", + "merge", + "merge_ordered", + "merge_asof", + "period_range", + "pivot", + "pivot_table", + "qcut", + "show_versions", + "timedelta_range", + "unique", + "value_counts", + "wide_to_long", + ] + + # top-level option funcs + funcs_option = [ + "reset_option", + "describe_option", + "get_option", + "option_context", + "set_option", + "set_eng_float_format", + ] + + # top-level read_* funcs + funcs_read = [ + "read_clipboard", + "read_csv", + "read_excel", + "read_fwf", + "read_gbq", + "read_hdf", + "read_html", + "read_xml", + "read_json", + "read_pickle", + "read_sas", + "read_sql", + "read_sql_query", + "read_sql_table", + "read_stata", + "read_table", + "read_feather", + "read_parquet", + "read_orc", + "read_spss", + ] + + # top-level json funcs + funcs_json = ["json_normalize"] + + # top-level to_* funcs + funcs_to = ["to_datetime", "to_numeric", "to_pickle", "to_timedelta"] + + # top-level to deprecate in the future + deprecated_funcs_in_future: list[str] = [] + + # these are already deprecated; awaiting removal + deprecated_funcs: list[str] = [] + + # private modules in pandas namespace + private_modules = [ + "_config", + "_libs", + "_is_numpy_dev", + "_pandas_datetime_CAPI", + "_pandas_parser_CAPI", + "_testing", + "_typing", + ] + if not pd._built_with_meson: + private_modules.append("_version") + + def test_api(self): + checkthese = ( + self.public_lib + + self.private_lib + + self.misc + + self.modules + + self.classes + + self.funcs + + self.funcs_option + + self.funcs_read + + self.funcs_json + + self.funcs_to + + self.private_modules + ) + self.check(namespace=pd, expected=checkthese, ignored=self.ignored) + + def test_api_all(self): + expected = set( + self.public_lib + + self.misc + + self.modules + + self.classes + + self.funcs + + self.funcs_option + + self.funcs_read + + self.funcs_json + + self.funcs_to + ) - set(self.deprecated_classes) + actual = set(pd.__all__) + + extraneous = actual - expected + assert not extraneous + + missing = expected - actual + assert not missing + + def test_depr(self): + deprecated_list = ( + self.deprecated_classes + + self.deprecated_funcs + + self.deprecated_funcs_in_future + ) + for depr in deprecated_list: + with tm.assert_produces_warning(FutureWarning): + _ = getattr(pd, depr) + + +class TestApi(Base): + allowed_api_dirs = [ + "types", + "extensions", + "indexers", + "interchange", + "typing", + ] + allowed_typing = [ + "DataFrameGroupBy", + "DatetimeIndexResamplerGroupby", + "Expanding", + "ExpandingGroupby", + "ExponentialMovingWindow", + "ExponentialMovingWindowGroupby", + "JsonReader", + "NaTType", + "NAType", + "PeriodIndexResamplerGroupby", + "Resampler", + "Rolling", + "RollingGroupby", + "SeriesGroupBy", + "StataReader", + "TimedeltaIndexResamplerGroupby", + "TimeGrouper", + "Window", + ] + allowed_api_types = [ + "is_any_real_numeric_dtype", + "is_array_like", + "is_bool", + "is_bool_dtype", + "is_categorical_dtype", + "is_complex", + "is_complex_dtype", + "is_datetime64_any_dtype", + "is_datetime64_dtype", + "is_datetime64_ns_dtype", + "is_datetime64tz_dtype", + "is_dict_like", + "is_dtype_equal", + "is_extension_array_dtype", + "is_file_like", + "is_float", + "is_float_dtype", + "is_hashable", + "is_int64_dtype", + "is_integer", + "is_integer_dtype", + "is_interval", + "is_interval_dtype", + "is_iterator", + "is_list_like", + "is_named_tuple", + "is_number", + "is_numeric_dtype", + "is_object_dtype", + "is_period_dtype", + "is_re", + "is_re_compilable", + "is_scalar", + "is_signed_integer_dtype", + "is_sparse", + "is_string_dtype", + "is_timedelta64_dtype", + "is_timedelta64_ns_dtype", + "is_unsigned_integer_dtype", + "pandas_dtype", + "infer_dtype", + "union_categoricals", + "CategoricalDtype", + "DatetimeTZDtype", + "IntervalDtype", + "PeriodDtype", + ] + allowed_api_interchange = ["from_dataframe", "DataFrame"] + allowed_api_indexers = [ + "check_array_indexer", + "BaseIndexer", + "FixedForwardWindowIndexer", + "VariableOffsetWindowIndexer", + ] + allowed_api_extensions = [ + "no_default", + "ExtensionDtype", + "register_extension_dtype", + "register_dataframe_accessor", + "register_index_accessor", + "register_series_accessor", + "take", + "ExtensionArray", + "ExtensionScalarOpsMixin", + ] + + def test_api(self): + self.check(api, self.allowed_api_dirs) + + def test_api_typing(self): + self.check(api_typing, self.allowed_typing) + + def test_api_types(self): + self.check(api_types, self.allowed_api_types) + + def test_api_interchange(self): + self.check(api_interchange, self.allowed_api_interchange) + + def test_api_indexers(self): + self.check(api_indexers, self.allowed_api_indexers) + + def test_api_extensions(self): + self.check(api_extensions, self.allowed_api_extensions) + + +class TestTesting(Base): + funcs = [ + "assert_frame_equal", + "assert_series_equal", + "assert_index_equal", + "assert_extension_array_equal", + ] + + def test_testing(self): + from pandas import testing + + self.check(testing, self.funcs) + + def test_util_in_top_level(self): + with pytest.raises(AttributeError, match="foo"): + pd.util.foo + + +def test_pandas_array_alias(): + msg = "PandasArray has been renamed NumpyExtensionArray" + with tm.assert_produces_warning(FutureWarning, match=msg): + res = pd.arrays.PandasArray + + assert res is pd.arrays.NumpyExtensionArray diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/api/test_types.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/api/test_types.py new file mode 100644 index 0000000000000000000000000000000000000000..fbaa6e7e18bcaa9a574b741b5361818f1be01ecf --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/api/test_types.py @@ -0,0 +1,62 @@ +from __future__ import annotations + +import pandas._testing as tm +from pandas.api import types +from pandas.tests.api.test_api import Base + + +class TestTypes(Base): + allowed = [ + "is_any_real_numeric_dtype", + "is_bool", + "is_bool_dtype", + "is_categorical_dtype", + "is_complex", + "is_complex_dtype", + "is_datetime64_any_dtype", + "is_datetime64_dtype", + "is_datetime64_ns_dtype", + "is_datetime64tz_dtype", + "is_dtype_equal", + "is_float", + "is_float_dtype", + "is_int64_dtype", + "is_integer", + "is_integer_dtype", + "is_number", + "is_numeric_dtype", + "is_object_dtype", + "is_scalar", + "is_sparse", + "is_string_dtype", + "is_signed_integer_dtype", + "is_timedelta64_dtype", + "is_timedelta64_ns_dtype", + "is_unsigned_integer_dtype", + "is_period_dtype", + "is_interval", + "is_interval_dtype", + "is_re", + "is_re_compilable", + "is_dict_like", + "is_iterator", + "is_file_like", + "is_list_like", + "is_hashable", + "is_array_like", + "is_named_tuple", + "pandas_dtype", + "union_categoricals", + "infer_dtype", + "is_extension_array_dtype", + ] + deprecated: list[str] = [] + dtypes = ["CategoricalDtype", "DatetimeTZDtype", "PeriodDtype", "IntervalDtype"] + + def test_types(self): + self.check(types, self.allowed + self.dtypes + self.deprecated) + + def test_deprecated_from_api_types(self): + for t in self.deprecated: + with tm.assert_produces_warning(FutureWarning): + getattr(types, t)(1) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/common.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/common.py new file mode 100644 index 0000000000000000000000000000000000000000..b4d153df54059ca2a82f336e19afb4297eb218a2 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/common.py @@ -0,0 +1,7 @@ +from pandas.core.groupby.base import transformation_kernels + +# There is no Series.cumcount or DataFrame.cumcount +series_transform_kernels = [ + x for x in sorted(transformation_kernels) if x != "cumcount" +] +frame_transform_kernels = [x for x in sorted(transformation_kernels) if x != "cumcount"] diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/test_frame_apply.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/test_frame_apply.py new file mode 100644 index 0000000000000000000000000000000000000000..1a776892b7bb754e16aaa34e6dbe281b354ee751 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/test_frame_apply.py @@ -0,0 +1,1739 @@ +from datetime import datetime +import warnings + +import numpy as np +import pytest + +from pandas.compat import is_platform_arm + +from pandas.core.dtypes.dtypes import CategoricalDtype + +import pandas as pd +from pandas import ( + DataFrame, + MultiIndex, + Series, + Timestamp, + date_range, +) +import pandas._testing as tm +from pandas.tests.frame.common import zip_frames +from pandas.util.version import Version + + +@pytest.fixture +def int_frame_const_col(): + """ + Fixture for DataFrame of ints which are constant per column + + Columns are ['A', 'B', 'C'], with values (per column): [1, 2, 3] + """ + df = DataFrame( + np.tile(np.arange(3, dtype="int64"), 6).reshape(6, -1) + 1, + columns=["A", "B", "C"], + ) + return df + + +@pytest.fixture(params=["python", pytest.param("numba", marks=pytest.mark.single_cpu)]) +def engine(request): + if request.param == "numba": + pytest.importorskip("numba") + return request.param + + +def test_apply(float_frame, engine, request): + if engine == "numba": + mark = pytest.mark.xfail(reason="numba engine not supporting numpy ufunc yet") + request.node.add_marker(mark) + with np.errstate(all="ignore"): + # ufunc + result = np.sqrt(float_frame["A"]) + expected = float_frame.apply(np.sqrt, engine=engine)["A"] + tm.assert_series_equal(result, expected) + + # aggregator + result = float_frame.apply(np.mean, engine=engine)["A"] + expected = np.mean(float_frame["A"]) + assert result == expected + + d = float_frame.index[0] + result = float_frame.apply(np.mean, axis=1, engine=engine) + expected = np.mean(float_frame.xs(d)) + assert result[d] == expected + assert result.index is float_frame.index + + +@pytest.mark.parametrize("axis", [0, 1]) +@pytest.mark.parametrize("raw", [True, False]) +def test_apply_args(float_frame, axis, raw, engine, request): + if engine == "numba": + numba = pytest.importorskip("numba") + if Version(numba.__version__) == Version("0.61") and is_platform_arm(): + pytest.skip(f"Segfaults on ARM platforms with numba {numba.__version__}") + mark = pytest.mark.xfail(reason="numba engine doesn't support args") + request.node.add_marker(mark) + result = float_frame.apply( + lambda x, y: x + y, axis, args=(1,), raw=raw, engine=engine + ) + expected = float_frame + 1 + tm.assert_frame_equal(result, expected) + + +def test_apply_categorical_func(): + # GH 9573 + df = DataFrame({"c0": ["A", "A", "B", "B"], "c1": ["C", "C", "D", "D"]}) + result = df.apply(lambda ts: ts.astype("category")) + + assert result.shape == (4, 2) + assert isinstance(result["c0"].dtype, CategoricalDtype) + assert isinstance(result["c1"].dtype, CategoricalDtype) + + +def test_apply_axis1_with_ea(): + # GH#36785 + expected = DataFrame({"A": [Timestamp("2013-01-01", tz="UTC")]}) + result = expected.apply(lambda x: x, axis=1) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "data, dtype", + [(1, None), (1, CategoricalDtype([1])), (Timestamp("2013-01-01", tz="UTC"), None)], +) +def test_agg_axis1_duplicate_index(data, dtype): + # GH 42380 + expected = DataFrame([[data], [data]], index=["a", "a"], dtype=dtype) + result = expected.agg(lambda x: x, axis=1) + tm.assert_frame_equal(result, expected) + + +def test_apply_mixed_datetimelike(): + # mixed datetimelike + # GH 7778 + expected = DataFrame( + { + "A": date_range("20130101", periods=3), + "B": pd.to_timedelta(np.arange(3), unit="s"), + } + ) + result = expected.apply(lambda x: x, axis=1) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("func", [np.sqrt, np.mean]) +def test_apply_empty(func, engine): + # empty + empty_frame = DataFrame() + + result = empty_frame.apply(func, engine=engine) + assert result.empty + + +def test_apply_float_frame(float_frame, engine): + no_rows = float_frame[:0] + result = no_rows.apply(lambda x: x.mean(), engine=engine) + expected = Series(np.nan, index=float_frame.columns) + tm.assert_series_equal(result, expected) + + no_cols = float_frame.loc[:, []] + result = no_cols.apply(lambda x: x.mean(), axis=1, engine=engine) + expected = Series(np.nan, index=float_frame.index) + tm.assert_series_equal(result, expected) + + +def test_apply_empty_except_index(engine): + # GH 2476 + expected = DataFrame(index=["a"]) + result = expected.apply(lambda x: x["a"], axis=1, engine=engine) + tm.assert_frame_equal(result, expected) + + +def test_apply_with_reduce_empty(): + # reduce with an empty DataFrame + empty_frame = DataFrame() + + x = [] + result = empty_frame.apply(x.append, axis=1, result_type="expand") + tm.assert_frame_equal(result, empty_frame) + result = empty_frame.apply(x.append, axis=1, result_type="reduce") + expected = Series([], dtype=np.float64) + tm.assert_series_equal(result, expected) + + empty_with_cols = DataFrame(columns=["a", "b", "c"]) + result = empty_with_cols.apply(x.append, axis=1, result_type="expand") + tm.assert_frame_equal(result, empty_with_cols) + result = empty_with_cols.apply(x.append, axis=1, result_type="reduce") + expected = Series([], dtype=np.float64) + tm.assert_series_equal(result, expected) + + # Ensure that x.append hasn't been called + assert x == [] + + +@pytest.mark.parametrize("func", ["sum", "prod", "any", "all"]) +def test_apply_funcs_over_empty(func): + # GH 28213 + df = DataFrame(columns=["a", "b", "c"]) + + result = df.apply(getattr(np, func)) + expected = getattr(df, func)() + if func in ("sum", "prod"): + expected = expected.astype(float) + tm.assert_series_equal(result, expected) + + +def test_nunique_empty(): + # GH 28213 + df = DataFrame(columns=["a", "b", "c"]) + + result = df.nunique() + expected = Series(0, index=df.columns) + tm.assert_series_equal(result, expected) + + result = df.T.nunique() + expected = Series([], dtype=np.float64) + tm.assert_series_equal(result, expected) + + +def test_apply_standard_nonunique(): + df = DataFrame([[1, 2, 3], [4, 5, 6], [7, 8, 9]], index=["a", "a", "c"]) + + result = df.apply(lambda s: s[0], axis=1) + expected = Series([1, 4, 7], ["a", "a", "c"]) + tm.assert_series_equal(result, expected) + + result = df.T.apply(lambda s: s[0], axis=0) + tm.assert_series_equal(result, expected) + + +def test_apply_broadcast_scalars(float_frame): + # scalars + result = float_frame.apply(np.mean, result_type="broadcast") + expected = DataFrame([float_frame.mean()], index=float_frame.index) + tm.assert_frame_equal(result, expected) + + +def test_apply_broadcast_scalars_axis1(float_frame): + result = float_frame.apply(np.mean, axis=1, result_type="broadcast") + m = float_frame.mean(axis=1) + expected = DataFrame({c: m for c in float_frame.columns}) + tm.assert_frame_equal(result, expected) + + +def test_apply_broadcast_lists_columns(float_frame): + # lists + result = float_frame.apply( + lambda x: list(range(len(float_frame.columns))), + axis=1, + result_type="broadcast", + ) + m = list(range(len(float_frame.columns))) + expected = DataFrame( + [m] * len(float_frame.index), + dtype="float64", + index=float_frame.index, + columns=float_frame.columns, + ) + tm.assert_frame_equal(result, expected) + + +def test_apply_broadcast_lists_index(float_frame): + result = float_frame.apply( + lambda x: list(range(len(float_frame.index))), result_type="broadcast" + ) + m = list(range(len(float_frame.index))) + expected = DataFrame( + {c: m for c in float_frame.columns}, + dtype="float64", + index=float_frame.index, + ) + tm.assert_frame_equal(result, expected) + + +def test_apply_broadcast_list_lambda_func(int_frame_const_col): + # preserve columns + df = int_frame_const_col + result = df.apply(lambda x: [1, 2, 3], axis=1, result_type="broadcast") + tm.assert_frame_equal(result, df) + + +def test_apply_broadcast_series_lambda_func(int_frame_const_col): + df = int_frame_const_col + result = df.apply( + lambda x: Series([1, 2, 3], index=list("abc")), + axis=1, + result_type="broadcast", + ) + expected = df.copy() + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("axis", [0, 1]) +def test_apply_raw_float_frame(float_frame, axis, engine): + if engine == "numba": + pytest.skip("numba can't handle when UDF returns None.") + + def _assert_raw(x): + assert isinstance(x, np.ndarray) + assert x.ndim == 1 + + float_frame.apply(_assert_raw, axis=axis, engine=engine, raw=True) + + +@pytest.mark.parametrize("axis", [0, 1]) +def test_apply_raw_float_frame_lambda(float_frame, axis, engine): + result = float_frame.apply(np.mean, axis=axis, engine=engine, raw=True) + expected = float_frame.apply(lambda x: x.values.mean(), axis=axis) + tm.assert_series_equal(result, expected) + + +def test_apply_raw_float_frame_no_reduction(float_frame, engine): + # no reduction + result = float_frame.apply(lambda x: x * 2, engine=engine, raw=True) + expected = float_frame * 2 + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("axis", [0, 1]) +def test_apply_raw_mixed_type_frame(axis, engine): + if engine == "numba": + pytest.skip("isinstance check doesn't work with numba") + + def _assert_raw(x): + assert isinstance(x, np.ndarray) + assert x.ndim == 1 + + # Mixed dtype (GH-32423) + df = DataFrame( + { + "a": 1.0, + "b": 2, + "c": "foo", + "float32": np.array([1.0] * 10, dtype="float32"), + "int32": np.array([1] * 10, dtype="int32"), + }, + index=np.arange(10), + ) + df.apply(_assert_raw, axis=axis, engine=engine, raw=True) + + +def test_apply_axis1(float_frame): + d = float_frame.index[0] + result = float_frame.apply(np.mean, axis=1)[d] + expected = np.mean(float_frame.xs(d)) + assert result == expected + + +def test_apply_mixed_dtype_corner(): + df = DataFrame({"A": ["foo"], "B": [1.0]}) + result = df[:0].apply(np.mean, axis=1) + # the result here is actually kind of ambiguous, should it be a Series + # or a DataFrame? + expected = Series(np.nan, index=pd.Index([], dtype="int64")) + tm.assert_series_equal(result, expected) + + +def test_apply_mixed_dtype_corner_indexing(): + df = DataFrame({"A": ["foo"], "B": [1.0]}) + result = df.apply(lambda x: x["A"], axis=1) + expected = Series(["foo"], index=[0]) + tm.assert_series_equal(result, expected) + + result = df.apply(lambda x: x["B"], axis=1) + expected = Series([1.0], index=[0]) + tm.assert_series_equal(result, expected) + + +@pytest.mark.filterwarnings("ignore::RuntimeWarning") +@pytest.mark.parametrize("ax", ["index", "columns"]) +@pytest.mark.parametrize( + "func", [lambda x: x, lambda x: x.mean()], ids=["identity", "mean"] +) +@pytest.mark.parametrize("raw", [True, False]) +@pytest.mark.parametrize("axis", [0, 1]) +def test_apply_empty_infer_type(ax, func, raw, axis, engine, request): + df = DataFrame(**{ax: ["a", "b", "c"]}) + + with np.errstate(all="ignore"): + test_res = func(np.array([], dtype="f8")) + is_reduction = not isinstance(test_res, np.ndarray) + + result = df.apply(func, axis=axis, engine=engine, raw=raw) + if is_reduction: + agg_axis = df._get_agg_axis(axis) + assert isinstance(result, Series) + assert result.index is agg_axis + else: + assert isinstance(result, DataFrame) + + +def test_apply_empty_infer_type_broadcast(): + no_cols = DataFrame(index=["a", "b", "c"]) + result = no_cols.apply(lambda x: x.mean(), result_type="broadcast") + assert isinstance(result, DataFrame) + + +def test_apply_with_args_kwds_add_some(float_frame): + def add_some(x, howmuch=0): + return x + howmuch + + result = float_frame.apply(add_some, howmuch=2) + expected = float_frame.apply(lambda x: x + 2) + tm.assert_frame_equal(result, expected) + + +def test_apply_with_args_kwds_agg_and_add(float_frame): + def agg_and_add(x, howmuch=0): + return x.mean() + howmuch + + result = float_frame.apply(agg_and_add, howmuch=2) + expected = float_frame.apply(lambda x: x.mean() + 2) + tm.assert_series_equal(result, expected) + + +def test_apply_with_args_kwds_subtract_and_divide(float_frame): + def subtract_and_divide(x, sub, divide=1): + return (x - sub) / divide + + result = float_frame.apply(subtract_and_divide, args=(2,), divide=2) + expected = float_frame.apply(lambda x: (x - 2.0) / 2.0) + tm.assert_frame_equal(result, expected) + + +def test_apply_yield_list(float_frame): + result = float_frame.apply(list) + tm.assert_frame_equal(result, float_frame) + + +def test_apply_reduce_Series(float_frame): + float_frame.iloc[::2, float_frame.columns.get_loc("A")] = np.nan + expected = float_frame.mean(1) + result = float_frame.apply(np.mean, axis=1) + tm.assert_series_equal(result, expected) + + +def test_apply_reduce_to_dict(): + # GH 25196 37544 + data = DataFrame([[1, 2], [3, 4]], columns=["c0", "c1"], index=["i0", "i1"]) + + result = data.apply(dict, axis=0) + expected = Series([{"i0": 1, "i1": 3}, {"i0": 2, "i1": 4}], index=data.columns) + tm.assert_series_equal(result, expected) + + result = data.apply(dict, axis=1) + expected = Series([{"c0": 1, "c1": 2}, {"c0": 3, "c1": 4}], index=data.index) + tm.assert_series_equal(result, expected) + + +def test_apply_differently_indexed(): + df = DataFrame(np.random.default_rng(2).standard_normal((20, 10))) + + result = df.apply(Series.describe, axis=0) + expected = DataFrame({i: v.describe() for i, v in df.items()}, columns=df.columns) + tm.assert_frame_equal(result, expected) + + result = df.apply(Series.describe, axis=1) + expected = DataFrame({i: v.describe() for i, v in df.T.items()}, columns=df.index).T + tm.assert_frame_equal(result, expected) + + +def test_apply_bug(): + # GH 6125 + positions = DataFrame( + [ + [1, "ABC0", 50], + [1, "YUM0", 20], + [1, "DEF0", 20], + [2, "ABC1", 50], + [2, "YUM1", 20], + [2, "DEF1", 20], + ], + columns=["a", "market", "position"], + ) + + def f(r): + return r["market"] + + expected = positions.apply(f, axis=1) + + positions = DataFrame( + [ + [datetime(2013, 1, 1), "ABC0", 50], + [datetime(2013, 1, 2), "YUM0", 20], + [datetime(2013, 1, 3), "DEF0", 20], + [datetime(2013, 1, 4), "ABC1", 50], + [datetime(2013, 1, 5), "YUM1", 20], + [datetime(2013, 1, 6), "DEF1", 20], + ], + columns=["a", "market", "position"], + ) + result = positions.apply(f, axis=1) + tm.assert_series_equal(result, expected) + + +def test_apply_convert_objects(): + expected = DataFrame( + { + "A": [ + "foo", + "foo", + "foo", + "foo", + "bar", + "bar", + "bar", + "bar", + "foo", + "foo", + "foo", + ], + "B": [ + "one", + "one", + "one", + "two", + "one", + "one", + "one", + "two", + "two", + "two", + "one", + ], + "C": [ + "dull", + "dull", + "shiny", + "dull", + "dull", + "shiny", + "shiny", + "dull", + "shiny", + "shiny", + "shiny", + ], + "D": np.random.default_rng(2).standard_normal(11), + "E": np.random.default_rng(2).standard_normal(11), + "F": np.random.default_rng(2).standard_normal(11), + } + ) + + result = expected.apply(lambda x: x, axis=1) + tm.assert_frame_equal(result, expected) + + +def test_apply_attach_name(float_frame): + result = float_frame.apply(lambda x: x.name) + expected = Series(float_frame.columns, index=float_frame.columns) + tm.assert_series_equal(result, expected) + + +def test_apply_attach_name_axis1(float_frame): + result = float_frame.apply(lambda x: x.name, axis=1) + expected = Series(float_frame.index, index=float_frame.index) + tm.assert_series_equal(result, expected) + + +def test_apply_attach_name_non_reduction(float_frame): + # non-reductions + result = float_frame.apply(lambda x: np.repeat(x.name, len(x))) + expected = DataFrame( + np.tile(float_frame.columns, (len(float_frame.index), 1)), + index=float_frame.index, + columns=float_frame.columns, + ) + tm.assert_frame_equal(result, expected) + + +def test_apply_attach_name_non_reduction_axis1(float_frame): + result = float_frame.apply(lambda x: np.repeat(x.name, len(x)), axis=1) + expected = Series( + np.repeat(t[0], len(float_frame.columns)) for t in float_frame.itertuples() + ) + expected.index = float_frame.index + tm.assert_series_equal(result, expected) + + +def test_apply_multi_index(): + index = MultiIndex.from_arrays([["a", "a", "b"], ["c", "d", "d"]]) + s = DataFrame([[1, 2], [3, 4], [5, 6]], index=index, columns=["col1", "col2"]) + result = s.apply(lambda x: Series({"min": min(x), "max": max(x)}), 1) + expected = DataFrame([[1, 2], [3, 4], [5, 6]], index=index, columns=["min", "max"]) + tm.assert_frame_equal(result, expected, check_like=True) + + +@pytest.mark.parametrize( + "df, dicts", + [ + [ + DataFrame([["foo", "bar"], ["spam", "eggs"]]), + Series([{0: "foo", 1: "spam"}, {0: "bar", 1: "eggs"}]), + ], + [DataFrame([[0, 1], [2, 3]]), Series([{0: 0, 1: 2}, {0: 1, 1: 3}])], + ], +) +def test_apply_dict(df, dicts): + # GH 8735 + fn = lambda x: x.to_dict() + reduce_true = df.apply(fn, result_type="reduce") + reduce_false = df.apply(fn, result_type="expand") + reduce_none = df.apply(fn) + + tm.assert_series_equal(reduce_true, dicts) + tm.assert_frame_equal(reduce_false, df) + tm.assert_series_equal(reduce_none, dicts) + + +def test_apply_non_numpy_dtype(): + # GH 12244 + df = DataFrame({"dt": date_range("2015-01-01", periods=3, tz="Europe/Brussels")}) + result = df.apply(lambda x: x) + tm.assert_frame_equal(result, df) + + result = df.apply(lambda x: x + pd.Timedelta("1day")) + expected = DataFrame( + {"dt": date_range("2015-01-02", periods=3, tz="Europe/Brussels")} + ) + tm.assert_frame_equal(result, expected) + + +def test_apply_non_numpy_dtype_category(): + df = DataFrame({"dt": ["a", "b", "c", "a"]}, dtype="category") + result = df.apply(lambda x: x) + tm.assert_frame_equal(result, df) + + +def test_apply_dup_names_multi_agg(): + # GH 21063 + df = DataFrame([[0, 1], [2, 3]], columns=["a", "a"]) + expected = DataFrame([[0, 1]], columns=["a", "a"], index=["min"]) + result = df.agg(["min"]) + + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("op", ["apply", "agg"]) +def test_apply_nested_result_axis_1(op): + # GH 13820 + def apply_list(row): + return [2 * row["A"], 2 * row["C"], 2 * row["B"]] + + df = DataFrame(np.zeros((4, 4)), columns=list("ABCD")) + result = getattr(df, op)(apply_list, axis=1) + expected = Series( + [[0.0, 0.0, 0.0], [0.0, 0.0, 0.0], [0.0, 0.0, 0.0], [0.0, 0.0, 0.0]] + ) + tm.assert_series_equal(result, expected) + + +def test_apply_noreduction_tzaware_object(): + # https://github.com/pandas-dev/pandas/issues/31505 + expected = DataFrame( + {"foo": [Timestamp("2020", tz="UTC")]}, dtype="datetime64[ns, UTC]" + ) + result = expected.apply(lambda x: x) + tm.assert_frame_equal(result, expected) + result = expected.apply(lambda x: x.copy()) + tm.assert_frame_equal(result, expected) + + +def test_apply_function_runs_once(): + # https://github.com/pandas-dev/pandas/issues/30815 + + df = DataFrame({"a": [1, 2, 3]}) + names = [] # Save row names function is applied to + + def reducing_function(row): + names.append(row.name) + + def non_reducing_function(row): + names.append(row.name) + return row + + for func in [reducing_function, non_reducing_function]: + del names[:] + + df.apply(func, axis=1) + assert names == list(df.index) + + +def test_apply_raw_function_runs_once(engine): + # https://github.com/pandas-dev/pandas/issues/34506 + if engine == "numba": + pytest.skip("appending to list outside of numba func is not supported") + + df = DataFrame({"a": [1, 2, 3]}) + values = [] # Save row values function is applied to + + def reducing_function(row): + values.extend(row) + + def non_reducing_function(row): + values.extend(row) + return row + + for func in [reducing_function, non_reducing_function]: + del values[:] + + df.apply(func, engine=engine, raw=True, axis=1) + assert values == list(df.a.to_list()) + + +def test_apply_with_byte_string(): + # GH 34529 + df = DataFrame(np.array([b"abcd", b"efgh"]), columns=["col"]) + expected = DataFrame(np.array([b"abcd", b"efgh"]), columns=["col"], dtype=object) + # After we make the apply we expect a dataframe just + # like the original but with the object datatype + result = df.apply(lambda x: x.astype("object")) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("val", ["asd", 12, None, np.nan]) +def test_apply_category_equalness(val): + # Check if categorical comparisons on apply, GH 21239 + df_values = ["asd", None, 12, "asd", "cde", np.nan] + df = DataFrame({"a": df_values}, dtype="category") + + result = df.a.apply(lambda x: x == val) + expected = Series( + [np.nan if pd.isnull(x) else x == val for x in df_values], name="a" + ) + tm.assert_series_equal(result, expected) + + +# the user has supplied an opaque UDF where +# they are transforming the input that requires +# us to infer the output + + +def test_infer_row_shape(): + # GH 17437 + # if row shape is changing, infer it + df = DataFrame(np.random.default_rng(2).random((10, 2))) + result = df.apply(np.fft.fft, axis=0).shape + assert result == (10, 2) + + result = df.apply(np.fft.rfft, axis=0).shape + assert result == (6, 2) + + +@pytest.mark.parametrize( + "ops, by_row, expected", + [ + ({"a": lambda x: x + 1}, "compat", DataFrame({"a": [2, 3]})), + ({"a": lambda x: x + 1}, False, DataFrame({"a": [2, 3]})), + ({"a": lambda x: x.sum()}, "compat", Series({"a": 3})), + ({"a": lambda x: x.sum()}, False, Series({"a": 3})), + ( + {"a": ["sum", np.sum, lambda x: x.sum()]}, + "compat", + DataFrame({"a": [3, 3, 3]}, index=["sum", "sum", ""]), + ), + ( + {"a": ["sum", np.sum, lambda x: x.sum()]}, + False, + DataFrame({"a": [3, 3, 3]}, index=["sum", "sum", ""]), + ), + ({"a": lambda x: 1}, "compat", DataFrame({"a": [1, 1]})), + ({"a": lambda x: 1}, False, Series({"a": 1})), + ], +) +def test_dictlike_lambda(ops, by_row, expected): + # GH53601 + df = DataFrame({"a": [1, 2]}) + result = df.apply(ops, by_row=by_row) + tm.assert_equal(result, expected) + + +@pytest.mark.parametrize( + "ops", + [ + {"a": lambda x: x + 1}, + {"a": lambda x: x.sum()}, + {"a": ["sum", np.sum, lambda x: x.sum()]}, + {"a": lambda x: 1}, + ], +) +def test_dictlike_lambda_raises(ops): + # GH53601 + df = DataFrame({"a": [1, 2]}) + with pytest.raises(ValueError, match="by_row=True not allowed"): + df.apply(ops, by_row=True) + + +def test_with_dictlike_columns(): + # GH 17602 + df = DataFrame([[1, 2], [1, 2]], columns=["a", "b"]) + result = df.apply(lambda x: {"s": x["a"] + x["b"]}, axis=1) + expected = Series([{"s": 3} for t in df.itertuples()]) + tm.assert_series_equal(result, expected) + + df["tm"] = [ + Timestamp("2017-05-01 00:00:00"), + Timestamp("2017-05-02 00:00:00"), + ] + result = df.apply(lambda x: {"s": x["a"] + x["b"]}, axis=1) + tm.assert_series_equal(result, expected) + + # compose a series + result = (df["a"] + df["b"]).apply(lambda x: {"s": x}) + expected = Series([{"s": 3}, {"s": 3}]) + tm.assert_series_equal(result, expected) + + +def test_with_dictlike_columns_with_datetime(): + # GH 18775 + df = DataFrame() + df["author"] = ["X", "Y", "Z"] + df["publisher"] = ["BBC", "NBC", "N24"] + df["date"] = pd.to_datetime( + ["17-10-2010 07:15:30", "13-05-2011 08:20:35", "15-01-2013 09:09:09"], + dayfirst=True, + ) + result = df.apply(lambda x: {}, axis=1) + expected = Series([{}, {}, {}]) + tm.assert_series_equal(result, expected) + + +def test_with_dictlike_columns_with_infer(): + # GH 17602 + df = DataFrame([[1, 2], [1, 2]], columns=["a", "b"]) + result = df.apply(lambda x: {"s": x["a"] + x["b"]}, axis=1, result_type="expand") + expected = DataFrame({"s": [3, 3]}) + tm.assert_frame_equal(result, expected) + + df["tm"] = [ + Timestamp("2017-05-01 00:00:00"), + Timestamp("2017-05-02 00:00:00"), + ] + result = df.apply(lambda x: {"s": x["a"] + x["b"]}, axis=1, result_type="expand") + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "ops, by_row, expected", + [ + ([lambda x: x + 1], "compat", DataFrame({("a", ""): [2, 3]})), + ([lambda x: x + 1], False, DataFrame({("a", ""): [2, 3]})), + ([lambda x: x.sum()], "compat", DataFrame({"a": [3]}, index=[""])), + ([lambda x: x.sum()], False, DataFrame({"a": [3]}, index=[""])), + ( + ["sum", np.sum, lambda x: x.sum()], + "compat", + DataFrame({"a": [3, 3, 3]}, index=["sum", "sum", ""]), + ), + ( + ["sum", np.sum, lambda x: x.sum()], + False, + DataFrame({"a": [3, 3, 3]}, index=["sum", "sum", ""]), + ), + ( + [lambda x: x + 1, lambda x: 3], + "compat", + DataFrame([[2, 3], [3, 3]], columns=[["a", "a"], ["", ""]]), + ), + ( + [lambda x: 2, lambda x: 3], + False, + DataFrame({"a": [2, 3]}, ["", ""]), + ), + ], +) +def test_listlike_lambda(ops, by_row, expected): + # GH53601 + df = DataFrame({"a": [1, 2]}) + result = df.apply(ops, by_row=by_row) + tm.assert_equal(result, expected) + + +@pytest.mark.parametrize( + "ops", + [ + [lambda x: x + 1], + [lambda x: x.sum()], + ["sum", np.sum, lambda x: x.sum()], + [lambda x: x + 1, lambda x: 3], + ], +) +def test_listlike_lambda_raises(ops): + # GH53601 + df = DataFrame({"a": [1, 2]}) + with pytest.raises(ValueError, match="by_row=True not allowed"): + df.apply(ops, by_row=True) + + +def test_with_listlike_columns(): + # GH 17348 + df = DataFrame( + { + "a": Series(np.random.default_rng(2).standard_normal(4)), + "b": ["a", "list", "of", "words"], + "ts": date_range("2016-10-01", periods=4, freq="h"), + } + ) + + result = df[["a", "b"]].apply(tuple, axis=1) + expected = Series([t[1:] for t in df[["a", "b"]].itertuples()]) + tm.assert_series_equal(result, expected) + + result = df[["a", "ts"]].apply(tuple, axis=1) + expected = Series([t[1:] for t in df[["a", "ts"]].itertuples()]) + tm.assert_series_equal(result, expected) + + +def test_with_listlike_columns_returning_list(): + # GH 18919 + df = DataFrame({"x": Series([["a", "b"], ["q"]]), "y": Series([["z"], ["q", "t"]])}) + df.index = MultiIndex.from_tuples([("i0", "j0"), ("i1", "j1")]) + + result = df.apply(lambda row: [el for el in row["x"] if el in row["y"]], axis=1) + expected = Series([[], ["q"]], index=df.index) + tm.assert_series_equal(result, expected) + + +def test_infer_output_shape_columns(): + # GH 18573 + + df = DataFrame( + { + "number": [1.0, 2.0], + "string": ["foo", "bar"], + "datetime": [ + Timestamp("2017-11-29 03:30:00"), + Timestamp("2017-11-29 03:45:00"), + ], + } + ) + result = df.apply(lambda row: (row.number, row.string), axis=1) + expected = Series([(t.number, t.string) for t in df.itertuples()]) + tm.assert_series_equal(result, expected) + + +def test_infer_output_shape_listlike_columns(): + # GH 16353 + + df = DataFrame( + np.random.default_rng(2).standard_normal((6, 3)), columns=["A", "B", "C"] + ) + + result = df.apply(lambda x: [1, 2, 3], axis=1) + expected = Series([[1, 2, 3] for t in df.itertuples()]) + tm.assert_series_equal(result, expected) + + result = df.apply(lambda x: [1, 2], axis=1) + expected = Series([[1, 2] for t in df.itertuples()]) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("val", [1, 2]) +def test_infer_output_shape_listlike_columns_np_func(val): + # GH 17970 + df = DataFrame({"a": [1, 2, 3]}, index=list("abc")) + + result = df.apply(lambda row: np.ones(val), axis=1) + expected = Series([np.ones(val) for t in df.itertuples()], index=df.index) + tm.assert_series_equal(result, expected) + + +def test_infer_output_shape_listlike_columns_with_timestamp(): + # GH 17892 + df = DataFrame( + { + "a": [ + Timestamp("2010-02-01"), + Timestamp("2010-02-04"), + Timestamp("2010-02-05"), + Timestamp("2010-02-06"), + ], + "b": [9, 5, 4, 3], + "c": [5, 3, 4, 2], + "d": [1, 2, 3, 4], + } + ) + + def fun(x): + return (1, 2) + + result = df.apply(fun, axis=1) + expected = Series([(1, 2) for t in df.itertuples()]) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("lst", [[1, 2, 3], [1, 2]]) +def test_consistent_coerce_for_shapes(lst): + # we want column names to NOT be propagated + # just because the shape matches the input shape + df = DataFrame( + np.random.default_rng(2).standard_normal((4, 3)), columns=["A", "B", "C"] + ) + + result = df.apply(lambda x: lst, axis=1) + expected = Series([lst for t in df.itertuples()]) + tm.assert_series_equal(result, expected) + + +def test_consistent_names(int_frame_const_col): + # if a Series is returned, we should use the resulting index names + df = int_frame_const_col + + result = df.apply( + lambda x: Series([1, 2, 3], index=["test", "other", "cols"]), axis=1 + ) + expected = int_frame_const_col.rename( + columns={"A": "test", "B": "other", "C": "cols"} + ) + tm.assert_frame_equal(result, expected) + + result = df.apply(lambda x: Series([1, 2], index=["test", "other"]), axis=1) + expected = expected[["test", "other"]] + tm.assert_frame_equal(result, expected) + + +def test_result_type(int_frame_const_col): + # result_type should be consistent no matter which + # path we take in the code + df = int_frame_const_col + + result = df.apply(lambda x: [1, 2, 3], axis=1, result_type="expand") + expected = df.copy() + expected.columns = [0, 1, 2] + tm.assert_frame_equal(result, expected) + + +def test_result_type_shorter_list(int_frame_const_col): + # result_type should be consistent no matter which + # path we take in the code + df = int_frame_const_col + result = df.apply(lambda x: [1, 2], axis=1, result_type="expand") + expected = df[["A", "B"]].copy() + expected.columns = [0, 1] + tm.assert_frame_equal(result, expected) + + +def test_result_type_broadcast(int_frame_const_col, request, engine): + # result_type should be consistent no matter which + # path we take in the code + if engine == "numba": + mark = pytest.mark.xfail(reason="numba engine doesn't support list return") + request.node.add_marker(mark) + df = int_frame_const_col + # broadcast result + result = df.apply( + lambda x: [1, 2, 3], axis=1, result_type="broadcast", engine=engine + ) + expected = df.copy() + tm.assert_frame_equal(result, expected) + + +def test_result_type_broadcast_series_func(int_frame_const_col, engine, request): + # result_type should be consistent no matter which + # path we take in the code + if engine == "numba": + mark = pytest.mark.xfail( + reason="numba Series constructor only support ndarrays not list data" + ) + request.node.add_marker(mark) + df = int_frame_const_col + columns = ["other", "col", "names"] + result = df.apply( + lambda x: Series([1, 2, 3], index=columns), + axis=1, + result_type="broadcast", + engine=engine, + ) + expected = df.copy() + tm.assert_frame_equal(result, expected) + + +def test_result_type_series_result(int_frame_const_col, engine, request): + # result_type should be consistent no matter which + # path we take in the code + if engine == "numba": + mark = pytest.mark.xfail( + reason="numba Series constructor only support ndarrays not list data" + ) + request.node.add_marker(mark) + df = int_frame_const_col + # series result + result = df.apply(lambda x: Series([1, 2, 3], index=x.index), axis=1, engine=engine) + expected = df.copy() + tm.assert_frame_equal(result, expected) + + +def test_result_type_series_result_other_index(int_frame_const_col, engine, request): + # result_type should be consistent no matter which + # path we take in the code + + if engine == "numba": + mark = pytest.mark.xfail( + reason="no support in numba Series constructor for list of columns" + ) + request.node.add_marker(mark) + df = int_frame_const_col + # series result with other index + columns = ["other", "col", "names"] + result = df.apply(lambda x: Series([1, 2, 3], index=columns), axis=1, engine=engine) + expected = df.copy() + expected.columns = columns + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "box", + [lambda x: list(x), lambda x: tuple(x), lambda x: np.array(x, dtype="int64")], + ids=["list", "tuple", "array"], +) +def test_consistency_for_boxed(box, int_frame_const_col): + # passing an array or list should not affect the output shape + df = int_frame_const_col + + result = df.apply(lambda x: box([1, 2]), axis=1) + expected = Series([box([1, 2]) for t in df.itertuples()]) + tm.assert_series_equal(result, expected) + + result = df.apply(lambda x: box([1, 2]), axis=1, result_type="expand") + expected = int_frame_const_col[["A", "B"]].rename(columns={"A": 0, "B": 1}) + tm.assert_frame_equal(result, expected) + + +def test_agg_transform(axis, float_frame): + other_axis = 1 if axis in {0, "index"} else 0 + + with np.errstate(all="ignore"): + f_abs = np.abs(float_frame) + f_sqrt = np.sqrt(float_frame) + + # ufunc + expected = f_sqrt.copy() + result = float_frame.apply(np.sqrt, axis=axis) + tm.assert_frame_equal(result, expected) + + # list-like + result = float_frame.apply([np.sqrt], axis=axis) + expected = f_sqrt.copy() + if axis in {0, "index"}: + expected.columns = MultiIndex.from_product([float_frame.columns, ["sqrt"]]) + else: + expected.index = MultiIndex.from_product([float_frame.index, ["sqrt"]]) + tm.assert_frame_equal(result, expected) + + # multiple items in list + # these are in the order as if we are applying both + # functions per series and then concatting + result = float_frame.apply([np.abs, np.sqrt], axis=axis) + expected = zip_frames([f_abs, f_sqrt], axis=other_axis) + if axis in {0, "index"}: + expected.columns = MultiIndex.from_product( + [float_frame.columns, ["absolute", "sqrt"]] + ) + else: + expected.index = MultiIndex.from_product( + [float_frame.index, ["absolute", "sqrt"]] + ) + tm.assert_frame_equal(result, expected) + + +def test_demo(): + # demonstration tests + df = DataFrame({"A": range(5), "B": 5}) + + result = df.agg(["min", "max"]) + expected = DataFrame( + {"A": [0, 4], "B": [5, 5]}, columns=["A", "B"], index=["min", "max"] + ) + tm.assert_frame_equal(result, expected) + + +def test_demo_dict_agg(): + # demonstration tests + df = DataFrame({"A": range(5), "B": 5}) + result = df.agg({"A": ["min", "max"], "B": ["sum", "max"]}) + expected = DataFrame( + {"A": [4.0, 0.0, np.nan], "B": [5.0, np.nan, 25.0]}, + columns=["A", "B"], + index=["max", "min", "sum"], + ) + tm.assert_frame_equal(result.reindex_like(expected), expected) + + +def test_agg_with_name_as_column_name(): + # GH 36212 - Column name is "name" + data = {"name": ["foo", "bar"]} + df = DataFrame(data) + + # result's name should be None + result = df.agg({"name": "count"}) + expected = Series({"name": 2}) + tm.assert_series_equal(result, expected) + + # Check if name is still preserved when aggregating series instead + result = df["name"].agg({"name": "count"}) + expected = Series({"name": 2}, name="name") + tm.assert_series_equal(result, expected) + + +def test_agg_multiple_mixed(): + # GH 20909 + mdf = DataFrame( + { + "A": [1, 2, 3], + "B": [1.0, 2.0, 3.0], + "C": ["foo", "bar", "baz"], + } + ) + expected = DataFrame( + { + "A": [1, 6], + "B": [1.0, 6.0], + "C": ["bar", "foobarbaz"], + }, + index=["min", "sum"], + ) + # sorted index + result = mdf.agg(["min", "sum"]) + tm.assert_frame_equal(result, expected) + + result = mdf[["C", "B", "A"]].agg(["sum", "min"]) + # GH40420: the result of .agg should have an index that is sorted + # according to the arguments provided to agg. + expected = expected[["C", "B", "A"]].reindex(["sum", "min"]) + tm.assert_frame_equal(result, expected) + + +def test_agg_multiple_mixed_raises(): + # GH 20909 + mdf = DataFrame( + { + "A": [1, 2, 3], + "B": [1.0, 2.0, 3.0], + "C": ["foo", "bar", "baz"], + "D": date_range("20130101", periods=3), + } + ) + + # sorted index + msg = "does not support reduction" + with pytest.raises(TypeError, match=msg): + mdf.agg(["min", "sum"]) + + with pytest.raises(TypeError, match=msg): + mdf[["D", "C", "B", "A"]].agg(["sum", "min"]) + + +def test_agg_reduce(axis, float_frame): + other_axis = 1 if axis in {0, "index"} else 0 + name1, name2 = float_frame.axes[other_axis].unique()[:2].sort_values() + + # all reducers + expected = pd.concat( + [ + float_frame.mean(axis=axis), + float_frame.max(axis=axis), + float_frame.sum(axis=axis), + ], + axis=1, + ) + expected.columns = ["mean", "max", "sum"] + expected = expected.T if axis in {0, "index"} else expected + + result = float_frame.agg(["mean", "max", "sum"], axis=axis) + tm.assert_frame_equal(result, expected) + + # dict input with scalars + func = {name1: "mean", name2: "sum"} + result = float_frame.agg(func, axis=axis) + expected = Series( + [ + float_frame.loc(other_axis)[name1].mean(), + float_frame.loc(other_axis)[name2].sum(), + ], + index=[name1, name2], + ) + tm.assert_series_equal(result, expected) + + # dict input with lists + func = {name1: ["mean"], name2: ["sum"]} + result = float_frame.agg(func, axis=axis) + expected = DataFrame( + { + name1: Series([float_frame.loc(other_axis)[name1].mean()], index=["mean"]), + name2: Series([float_frame.loc(other_axis)[name2].sum()], index=["sum"]), + } + ) + expected = expected.T if axis in {1, "columns"} else expected + tm.assert_frame_equal(result, expected) + + # dict input with lists with multiple + func = {name1: ["mean", "sum"], name2: ["sum", "max"]} + result = float_frame.agg(func, axis=axis) + expected = pd.concat( + { + name1: Series( + [ + float_frame.loc(other_axis)[name1].mean(), + float_frame.loc(other_axis)[name1].sum(), + ], + index=["mean", "sum"], + ), + name2: Series( + [ + float_frame.loc(other_axis)[name2].sum(), + float_frame.loc(other_axis)[name2].max(), + ], + index=["sum", "max"], + ), + }, + axis=1, + ) + expected = expected.T if axis in {1, "columns"} else expected + tm.assert_frame_equal(result, expected) + + +def test_nuiscance_columns(): + # GH 15015 + df = DataFrame( + { + "A": [1, 2, 3], + "B": [1.0, 2.0, 3.0], + "C": ["foo", "bar", "baz"], + "D": date_range("20130101", periods=3), + } + ) + + result = df.agg("min") + expected = Series([1, 1.0, "bar", Timestamp("20130101")], index=df.columns) + tm.assert_series_equal(result, expected) + + result = df.agg(["min"]) + expected = DataFrame( + [[1, 1.0, "bar", Timestamp("20130101").as_unit("ns")]], + index=["min"], + columns=df.columns, + ) + tm.assert_frame_equal(result, expected) + + msg = "does not support reduction" + with pytest.raises(TypeError, match=msg): + df.agg("sum") + + result = df[["A", "B", "C"]].agg("sum") + expected = Series([6, 6.0, "foobarbaz"], index=["A", "B", "C"]) + tm.assert_series_equal(result, expected) + + msg = "does not support reduction" + with pytest.raises(TypeError, match=msg): + df.agg(["sum"]) + + +@pytest.mark.parametrize("how", ["agg", "apply"]) +def test_non_callable_aggregates(how): + # GH 16405 + # 'size' is a property of frame/series + # validate that this is working + # GH 39116 - expand to apply + df = DataFrame( + {"A": [None, 2, 3], "B": [1.0, np.nan, 3.0], "C": ["foo", None, "bar"]} + ) + + # Function aggregate + result = getattr(df, how)({"A": "count"}) + expected = Series({"A": 2}) + + tm.assert_series_equal(result, expected) + + # Non-function aggregate + result = getattr(df, how)({"A": "size"}) + expected = Series({"A": 3}) + + tm.assert_series_equal(result, expected) + + # Mix function and non-function aggs + result1 = getattr(df, how)(["count", "size"]) + result2 = getattr(df, how)( + {"A": ["count", "size"], "B": ["count", "size"], "C": ["count", "size"]} + ) + expected = DataFrame( + { + "A": {"count": 2, "size": 3}, + "B": {"count": 2, "size": 3}, + "C": {"count": 2, "size": 3}, + } + ) + + tm.assert_frame_equal(result1, result2, check_like=True) + tm.assert_frame_equal(result2, expected, check_like=True) + + # Just functional string arg is same as calling df.arg() + result = getattr(df, how)("count") + expected = df.count() + + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("how", ["agg", "apply"]) +def test_size_as_str(how, axis): + # GH 39934 + df = DataFrame( + {"A": [None, 2, 3], "B": [1.0, np.nan, 3.0], "C": ["foo", None, "bar"]} + ) + # Just a string attribute arg same as calling df.arg + # on the columns + result = getattr(df, how)("size", axis=axis) + if axis in (0, "index"): + expected = Series(df.shape[0], index=df.columns) + else: + expected = Series(df.shape[1], index=df.index) + tm.assert_series_equal(result, expected) + + +def test_agg_listlike_result(): + # GH-29587 user defined function returning list-likes + df = DataFrame({"A": [2, 2, 3], "B": [1.5, np.nan, 1.5], "C": ["foo", None, "bar"]}) + + def func(group_col): + return list(group_col.dropna().unique()) + + result = df.agg(func) + expected = Series([[2, 3], [1.5], ["foo", "bar"]], index=["A", "B", "C"]) + tm.assert_series_equal(result, expected) + + result = df.agg([func]) + expected = expected.to_frame("func").T + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("axis", [0, 1]) +@pytest.mark.parametrize( + "args, kwargs", + [ + ((1, 2, 3), {}), + ((8, 7, 15), {}), + ((1, 2), {}), + ((1,), {"b": 2}), + ((), {"a": 1, "b": 2}), + ((), {"a": 2, "b": 1}), + ((), {"a": 1, "b": 2, "c": 3}), + ], +) +def test_agg_args_kwargs(axis, args, kwargs): + def f(x, a, b, c=3): + return x.sum() + (a + b) / c + + df = DataFrame([[1, 2], [3, 4]]) + + if axis == 0: + expected = Series([5.0, 7.0]) + else: + expected = Series([4.0, 8.0]) + + result = df.agg(f, axis, *args, **kwargs) + + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("num_cols", [2, 3, 5]) +def test_frequency_is_original(num_cols, engine, request): + # GH 22150 + if engine == "numba": + mark = pytest.mark.xfail(reason="numba engine only supports numeric indices") + request.node.add_marker(mark) + index = pd.DatetimeIndex(["1950-06-30", "1952-10-24", "1953-05-29"]) + original = index.copy() + df = DataFrame(1, index=index, columns=range(num_cols)) + df.apply(lambda x: x, engine=engine) + assert index.freq == original.freq + + +def test_apply_datetime_tz_issue(engine, request): + # GH 29052 + + if engine == "numba": + mark = pytest.mark.xfail( + reason="numba engine doesn't support non-numeric indexes" + ) + request.node.add_marker(mark) + + timestamps = [ + Timestamp("2019-03-15 12:34:31.909000+0000", tz="UTC"), + Timestamp("2019-03-15 12:34:34.359000+0000", tz="UTC"), + Timestamp("2019-03-15 12:34:34.660000+0000", tz="UTC"), + ] + df = DataFrame(data=[0, 1, 2], index=timestamps) + result = df.apply(lambda x: x.name, axis=1, engine=engine) + expected = Series(index=timestamps, data=timestamps) + + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("df", [DataFrame({"A": ["a", None], "B": ["c", "d"]})]) +@pytest.mark.parametrize("method", ["min", "max", "sum"]) +def test_mixed_column_raises(df, method, using_infer_string): + # GH 16832 + if method == "sum": + msg = r'can only concatenate str \(not "int"\) to str|does not support' + else: + msg = "not supported between instances of 'str' and 'float'" + if not using_infer_string: + with pytest.raises(TypeError, match=msg): + getattr(df, method)() + else: + getattr(df, method)() + + +@pytest.mark.parametrize("col", [1, 1.0, True, "a", np.nan]) +def test_apply_dtype(col): + # GH 31466 + df = DataFrame([[1.0, col]], columns=["a", "b"]) + result = df.apply(lambda x: x.dtype) + expected = df.dtypes + + tm.assert_series_equal(result, expected) + + +def test_apply_mutating(using_array_manager, using_copy_on_write, warn_copy_on_write): + # GH#35462 case where applied func pins a new BlockManager to a row + df = DataFrame({"a": range(100), "b": range(100, 200)}) + df_orig = df.copy() + + def func(row): + mgr = row._mgr + row.loc["a"] += 1 + assert row._mgr is not mgr + return row + + expected = df.copy() + expected["a"] += 1 + + with tm.assert_cow_warning(warn_copy_on_write): + result = df.apply(func, axis=1) + + tm.assert_frame_equal(result, expected) + if using_copy_on_write or using_array_manager: + # INFO(CoW) With copy on write, mutating a viewing row doesn't mutate the parent + # INFO(ArrayManager) With BlockManager, the row is a view and mutated in place, + # with ArrayManager the row is not a view, and thus not mutated in place + tm.assert_frame_equal(df, df_orig) + else: + tm.assert_frame_equal(df, result) + + +def test_apply_empty_list_reduce(): + # GH#35683 get columns correct + df = DataFrame([[1, 2], [3, 4], [5, 6], [7, 8], [9, 10]], columns=["a", "b"]) + + result = df.apply(lambda x: [], result_type="reduce") + expected = Series({"a": [], "b": []}, dtype=object) + tm.assert_series_equal(result, expected) + + +def test_apply_no_suffix_index(engine, request): + # GH36189 + if engine == "numba": + mark = pytest.mark.xfail( + reason="numba engine doesn't support list-likes/dict-like callables" + ) + request.node.add_marker(mark) + pdf = DataFrame([[4, 9]] * 3, columns=["A", "B"]) + result = pdf.apply(["sum", lambda x: x.sum(), lambda x: x.sum()], engine=engine) + expected = DataFrame( + {"A": [12, 12, 12], "B": [27, 27, 27]}, index=["sum", "", ""] + ) + + tm.assert_frame_equal(result, expected) + + +def test_apply_raw_returns_string(engine): + # https://github.com/pandas-dev/pandas/issues/35940 + if engine == "numba": + pytest.skip("No object dtype support in numba") + df = DataFrame({"A": ["aa", "bbb"]}) + result = df.apply(lambda x: x[0], engine=engine, axis=1, raw=True) + expected = Series(["aa", "bbb"]) + tm.assert_series_equal(result, expected) + + +def test_aggregation_func_column_order(): + # GH40420: the result of .agg should have an index that is sorted + # according to the arguments provided to agg. + df = DataFrame( + [ + (1, 0, 0), + (2, 0, 0), + (3, 0, 0), + (4, 5, 4), + (5, 6, 6), + (6, 7, 7), + ], + columns=("att1", "att2", "att3"), + ) + + def sum_div2(s): + return s.sum() / 2 + + aggs = ["sum", sum_div2, "count", "min"] + result = df.agg(aggs) + expected = DataFrame( + { + "att1": [21.0, 10.5, 6.0, 1.0], + "att2": [18.0, 9.0, 6.0, 0.0], + "att3": [17.0, 8.5, 6.0, 0.0], + }, + index=["sum", "sum_div2", "count", "min"], + ) + tm.assert_frame_equal(result, expected) + + +def test_apply_getitem_axis_1(engine, request): + # GH 13427 + if engine == "numba": + mark = pytest.mark.xfail( + reason="numba engine not supporting duplicate index values" + ) + request.node.add_marker(mark) + df = DataFrame({"a": [0, 1, 2], "b": [1, 2, 3]}) + result = df[["a", "a"]].apply( + lambda x: x.iloc[0] + x.iloc[1], axis=1, engine=engine + ) + expected = Series([0, 2, 4]) + tm.assert_series_equal(result, expected) + + +def test_nuisance_depr_passes_through_warnings(): + # GH 43740 + # DataFrame.agg with list-likes may emit warnings for both individual + # args and for entire columns, but we only want to emit once. We + # catch and suppress the warnings for individual args, but need to make + # sure if some other warnings were raised, they get passed through to + # the user. + + def expected_warning(x): + warnings.warn("Hello, World!") + return x.sum() + + df = DataFrame({"a": [1, 2, 3]}) + with tm.assert_produces_warning(UserWarning, match="Hello, World!"): + df.agg([expected_warning]) + + +def test_apply_type(): + # GH 46719 + df = DataFrame( + {"col1": [3, "string", float], "col2": [0.25, datetime(2020, 1, 1), np.nan]}, + index=["a", "b", "c"], + ) + + # axis=0 + result = df.apply(type, axis=0) + expected = Series({"col1": Series, "col2": Series}) + tm.assert_series_equal(result, expected) + + # axis=1 + result = df.apply(type, axis=1) + expected = Series({"a": Series, "b": Series, "c": Series}) + tm.assert_series_equal(result, expected) + + +def test_apply_on_empty_dataframe(engine): + # GH 39111 + df = DataFrame({"a": [1, 2], "b": [3, 0]}) + result = df.head(0).apply(lambda x: max(x["a"], x["b"]), axis=1, engine=engine) + expected = Series([], dtype=np.float64) + tm.assert_series_equal(result, expected) + + +def test_apply_return_list(): + df = DataFrame({"a": [1, 2], "b": [2, 3]}) + result = df.apply(lambda x: [x.values]) + expected = DataFrame({"a": [[1, 2]], "b": [[2, 3]]}) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "test, constant", + [ + ({"a": [1, 2, 3], "b": [1, 1, 1]}, {"a": [1, 2, 3], "b": [1]}), + ({"a": [2, 2, 2], "b": [1, 1, 1]}, {"a": [2], "b": [1]}), + ], +) +def test_unique_agg_type_is_series(test, constant): + # GH#22558 + df1 = DataFrame(test) + expected = Series(data=constant, index=["a", "b"], dtype="object") + aggregation = {"a": "unique", "b": "unique"} + + result = df1.agg(aggregation) + + tm.assert_series_equal(result, expected) + + +def test_any_apply_keyword_non_zero_axis_regression(): + # https://github.com/pandas-dev/pandas/issues/48656 + df = DataFrame({"A": [1, 2, 0], "B": [0, 2, 0], "C": [0, 0, 0]}) + expected = Series([True, True, False]) + tm.assert_series_equal(df.any(axis=1), expected) + + result = df.apply("any", axis=1) + tm.assert_series_equal(result, expected) + + result = df.apply("any", 1) + tm.assert_series_equal(result, expected) + + +def test_agg_mapping_func_deprecated(): + # GH 53325 + df = DataFrame({"x": [1, 2, 3]}) + + def foo1(x, a=1, c=0): + return x + a + c + + def foo2(x, b=2, c=0): + return x + b + c + + # single func already takes the vectorized path + result = df.agg(foo1, 0, 3, c=4) + expected = df + 7 + tm.assert_frame_equal(result, expected) + + msg = "using .+ in Series.agg cannot aggregate and" + + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.agg([foo1, foo2], 0, 3, c=4) + expected = DataFrame( + [[8, 8], [9, 9], [10, 10]], columns=[["x", "x"], ["foo1", "foo2"]] + ) + tm.assert_frame_equal(result, expected) + + # TODO: the result below is wrong, should be fixed (GH53325) + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.agg({"x": foo1}, 0, 3, c=4) + expected = DataFrame([2, 3, 4], columns=["x"]) + tm.assert_frame_equal(result, expected) + + +def test_agg_std(): + df = DataFrame(np.arange(6).reshape(3, 2), columns=["A", "B"]) + + with tm.assert_produces_warning(FutureWarning, match="using DataFrame.std"): + result = df.agg(np.std) + expected = Series({"A": 2.0, "B": 2.0}, dtype=float) + tm.assert_series_equal(result, expected) + + with tm.assert_produces_warning(FutureWarning, match="using Series.std"): + result = df.agg([np.std]) + expected = DataFrame({"A": 2.0, "B": 2.0}, index=["std"]) + tm.assert_frame_equal(result, expected) + + +def test_agg_dist_like_and_nonunique_columns(): + # GH#51099 + df = DataFrame( + {"A": [None, 2, 3], "B": [1.0, np.nan, 3.0], "C": ["foo", None, "bar"]} + ) + df.columns = ["A", "A", "C"] + + result = df.agg({"A": "count"}) + expected = df["A"].count() + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/test_frame_apply_relabeling.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/test_frame_apply_relabeling.py new file mode 100644 index 0000000000000000000000000000000000000000..723bdd349c0cb8a8f3fe73ded665b6d22260ffb5 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/test_frame_apply_relabeling.py @@ -0,0 +1,113 @@ +import numpy as np +import pytest + +from pandas.compat.numpy import np_version_gte1p25 + +import pandas as pd +import pandas._testing as tm + + +def test_agg_relabel(): + # GH 26513 + df = pd.DataFrame({"A": [1, 2, 1, 2], "B": [1, 2, 3, 4], "C": [3, 4, 5, 6]}) + + # simplest case with one column, one func + result = df.agg(foo=("B", "sum")) + expected = pd.DataFrame({"B": [10]}, index=pd.Index(["foo"])) + tm.assert_frame_equal(result, expected) + + # test on same column with different methods + result = df.agg(foo=("B", "sum"), bar=("B", "min")) + expected = pd.DataFrame({"B": [10, 1]}, index=pd.Index(["foo", "bar"])) + + tm.assert_frame_equal(result, expected) + + +def test_agg_relabel_multi_columns_multi_methods(): + # GH 26513, test on multiple columns with multiple methods + df = pd.DataFrame({"A": [1, 2, 1, 2], "B": [1, 2, 3, 4], "C": [3, 4, 5, 6]}) + result = df.agg( + foo=("A", "sum"), + bar=("B", "mean"), + cat=("A", "min"), + dat=("B", "max"), + f=("A", "max"), + g=("C", "min"), + ) + expected = pd.DataFrame( + { + "A": [6.0, np.nan, 1.0, np.nan, 2.0, np.nan], + "B": [np.nan, 2.5, np.nan, 4.0, np.nan, np.nan], + "C": [np.nan, np.nan, np.nan, np.nan, np.nan, 3.0], + }, + index=pd.Index(["foo", "bar", "cat", "dat", "f", "g"]), + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.xfail(np_version_gte1p25, reason="name of min now equals name of np.min") +def test_agg_relabel_partial_functions(): + # GH 26513, test on partial, functools or more complex cases + df = pd.DataFrame({"A": [1, 2, 1, 2], "B": [1, 2, 3, 4], "C": [3, 4, 5, 6]}) + msg = "using Series.[mean|min]" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.agg(foo=("A", np.mean), bar=("A", "mean"), cat=("A", min)) + expected = pd.DataFrame( + {"A": [1.5, 1.5, 1.0]}, index=pd.Index(["foo", "bar", "cat"]) + ) + tm.assert_frame_equal(result, expected) + + msg = "using Series.[mean|min|max|sum]" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.agg( + foo=("A", min), + bar=("A", np.min), + cat=("B", max), + dat=("C", "min"), + f=("B", np.sum), + kk=("B", lambda x: min(x)), + ) + expected = pd.DataFrame( + { + "A": [1.0, 1.0, np.nan, np.nan, np.nan, np.nan], + "B": [np.nan, np.nan, 4.0, np.nan, 10.0, 1.0], + "C": [np.nan, np.nan, np.nan, 3.0, np.nan, np.nan], + }, + index=pd.Index(["foo", "bar", "cat", "dat", "f", "kk"]), + ) + tm.assert_frame_equal(result, expected) + + +def test_agg_namedtuple(): + # GH 26513 + df = pd.DataFrame({"A": [0, 1], "B": [1, 2]}) + result = df.agg( + foo=pd.NamedAgg("B", "sum"), + bar=pd.NamedAgg("B", "min"), + cat=pd.NamedAgg(column="B", aggfunc="count"), + fft=pd.NamedAgg("B", aggfunc="max"), + ) + + expected = pd.DataFrame( + {"B": [3, 1, 2, 2]}, index=pd.Index(["foo", "bar", "cat", "fft"]) + ) + tm.assert_frame_equal(result, expected) + + result = df.agg( + foo=pd.NamedAgg("A", "min"), + bar=pd.NamedAgg(column="B", aggfunc="max"), + cat=pd.NamedAgg(column="A", aggfunc="max"), + ) + expected = pd.DataFrame( + {"A": [0.0, np.nan, 1.0], "B": [np.nan, 2.0, np.nan]}, + index=pd.Index(["foo", "bar", "cat"]), + ) + tm.assert_frame_equal(result, expected) + + +def test_reconstruct_func(): + # GH 28472, test to ensure reconstruct_func isn't moved; + # This method is used by other libraries (e.g. dask) + result = pd.core.apply.reconstruct_func("min") + expected = (False, "min", None, None) + tm.assert_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/test_frame_transform.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/test_frame_transform.py new file mode 100644 index 0000000000000000000000000000000000000000..558d76ae8fdc4b95d46bbe94e15822779bd7c53f --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/test_frame_transform.py @@ -0,0 +1,264 @@ +import numpy as np +import pytest + +from pandas import ( + DataFrame, + MultiIndex, + Series, +) +import pandas._testing as tm +from pandas.tests.apply.common import frame_transform_kernels +from pandas.tests.frame.common import zip_frames + + +def unpack_obj(obj, klass, axis): + """ + Helper to ensure we have the right type of object for a test parametrized + over frame_or_series. + """ + if klass is not DataFrame: + obj = obj["A"] + if axis != 0: + pytest.skip(f"Test is only for DataFrame with axis={axis}") + return obj + + +def test_transform_ufunc(axis, float_frame, frame_or_series): + # GH 35964 + obj = unpack_obj(float_frame, frame_or_series, axis) + + with np.errstate(all="ignore"): + f_sqrt = np.sqrt(obj) + + # ufunc + result = obj.transform(np.sqrt, axis=axis) + expected = f_sqrt + tm.assert_equal(result, expected) + + +@pytest.mark.parametrize( + "ops, names", + [ + ([np.sqrt], ["sqrt"]), + ([np.abs, np.sqrt], ["absolute", "sqrt"]), + (np.array([np.sqrt]), ["sqrt"]), + (np.array([np.abs, np.sqrt]), ["absolute", "sqrt"]), + ], +) +def test_transform_listlike(axis, float_frame, ops, names): + # GH 35964 + other_axis = 1 if axis in {0, "index"} else 0 + with np.errstate(all="ignore"): + expected = zip_frames([op(float_frame) for op in ops], axis=other_axis) + if axis in {0, "index"}: + expected.columns = MultiIndex.from_product([float_frame.columns, names]) + else: + expected.index = MultiIndex.from_product([float_frame.index, names]) + result = float_frame.transform(ops, axis=axis) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("ops", [[], np.array([])]) +def test_transform_empty_listlike(float_frame, ops, frame_or_series): + obj = unpack_obj(float_frame, frame_or_series, 0) + + with pytest.raises(ValueError, match="No transform functions were provided"): + obj.transform(ops) + + +def test_transform_listlike_func_with_args(): + # GH 50624 + df = DataFrame({"x": [1, 2, 3]}) + + def foo1(x, a=1, c=0): + return x + a + c + + def foo2(x, b=2, c=0): + return x + b + c + + msg = r"foo1\(\) got an unexpected keyword argument 'b'" + with pytest.raises(TypeError, match=msg): + df.transform([foo1, foo2], 0, 3, b=3, c=4) + + result = df.transform([foo1, foo2], 0, 3, c=4) + expected = DataFrame( + [[8, 8], [9, 9], [10, 10]], + columns=MultiIndex.from_tuples([("x", "foo1"), ("x", "foo2")]), + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("box", [dict, Series]) +def test_transform_dictlike(axis, float_frame, box): + # GH 35964 + if axis in (0, "index"): + e = float_frame.columns[0] + expected = float_frame[[e]].transform(np.abs) + else: + e = float_frame.index[0] + expected = float_frame.iloc[[0]].transform(np.abs) + result = float_frame.transform(box({e: np.abs}), axis=axis) + tm.assert_frame_equal(result, expected) + + +def test_transform_dictlike_mixed(): + # GH 40018 - mix of lists and non-lists in values of a dictionary + df = DataFrame({"a": [1, 2], "b": [1, 4], "c": [1, 4]}) + result = df.transform({"b": ["sqrt", "abs"], "c": "sqrt"}) + expected = DataFrame( + [[1.0, 1, 1.0], [2.0, 4, 2.0]], + columns=MultiIndex([("b", "c"), ("sqrt", "abs")], [(0, 0, 1), (0, 1, 0)]), + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "ops", + [ + {}, + {"A": []}, + {"A": [], "B": "cumsum"}, + {"A": "cumsum", "B": []}, + {"A": [], "B": ["cumsum"]}, + {"A": ["cumsum"], "B": []}, + ], +) +def test_transform_empty_dictlike(float_frame, ops, frame_or_series): + obj = unpack_obj(float_frame, frame_or_series, 0) + + with pytest.raises(ValueError, match="No transform functions were provided"): + obj.transform(ops) + + +@pytest.mark.parametrize("use_apply", [True, False]) +def test_transform_udf(axis, float_frame, use_apply, frame_or_series): + # GH 35964 + obj = unpack_obj(float_frame, frame_or_series, axis) + + # transform uses UDF either via apply or passing the entire DataFrame + def func(x): + # transform is using apply iff x is not a DataFrame + if use_apply == isinstance(x, frame_or_series): + # Force transform to fallback + raise ValueError + return x + 1 + + result = obj.transform(func, axis=axis) + expected = obj + 1 + tm.assert_equal(result, expected) + + +wont_fail = ["ffill", "bfill", "fillna", "pad", "backfill", "shift"] +frame_kernels_raise = [x for x in frame_transform_kernels if x not in wont_fail] + + +@pytest.mark.parametrize("op", [*frame_kernels_raise, lambda x: x + 1]) +def test_transform_bad_dtype(op, frame_or_series, request): + # GH 35964 + if op == "ngroup": + request.applymarker( + pytest.mark.xfail(raises=ValueError, reason="ngroup not valid for NDFrame") + ) + + obj = DataFrame({"A": 3 * [object]}) # DataFrame that will fail on most transforms + obj = tm.get_obj(obj, frame_or_series) + error = TypeError + msg = "|".join( + [ + "not supported between instances of 'type' and 'type'", + "unsupported operand type", + ] + ) + + with pytest.raises(error, match=msg): + obj.transform(op) + with pytest.raises(error, match=msg): + obj.transform([op]) + with pytest.raises(error, match=msg): + obj.transform({"A": op}) + with pytest.raises(error, match=msg): + obj.transform({"A": [op]}) + + +@pytest.mark.parametrize("op", frame_kernels_raise) +def test_transform_failure_typeerror(request, op): + # GH 35964 + + if op == "ngroup": + request.applymarker( + pytest.mark.xfail(raises=ValueError, reason="ngroup not valid for NDFrame") + ) + + # Using object makes most transform kernels fail + df = DataFrame({"A": 3 * [object], "B": [1, 2, 3]}) + error = TypeError + msg = "|".join( + [ + "not supported between instances of 'type' and 'type'", + "unsupported operand type", + ] + ) + + with pytest.raises(error, match=msg): + df.transform([op]) + + with pytest.raises(error, match=msg): + df.transform({"A": op, "B": op}) + + with pytest.raises(error, match=msg): + df.transform({"A": [op], "B": [op]}) + + with pytest.raises(error, match=msg): + df.transform({"A": [op, "shift"], "B": [op]}) + + +def test_transform_failure_valueerror(): + # GH 40211 + def op(x): + if np.sum(np.sum(x)) < 10: + raise ValueError + return x + + df = DataFrame({"A": [1, 2, 3], "B": [400, 500, 600]}) + msg = "Transform function failed" + + with pytest.raises(ValueError, match=msg): + df.transform([op]) + + with pytest.raises(ValueError, match=msg): + df.transform({"A": op, "B": op}) + + with pytest.raises(ValueError, match=msg): + df.transform({"A": [op], "B": [op]}) + + with pytest.raises(ValueError, match=msg): + df.transform({"A": [op, "shift"], "B": [op]}) + + +@pytest.mark.parametrize("use_apply", [True, False]) +def test_transform_passes_args(use_apply, frame_or_series): + # GH 35964 + # transform uses UDF either via apply or passing the entire DataFrame + expected_args = [1, 2] + expected_kwargs = {"c": 3} + + def f(x, a, b, c): + # transform is using apply iff x is not a DataFrame + if use_apply == isinstance(x, frame_or_series): + # Force transform to fallback + raise ValueError + assert [a, b] == expected_args + assert c == expected_kwargs["c"] + return x + + frame_or_series([1]).transform(f, 0, *expected_args, **expected_kwargs) + + +def test_transform_empty_dataframe(): + # https://github.com/pandas-dev/pandas/issues/39636 + df = DataFrame([], columns=["col1", "col2"]) + result = df.transform(lambda x: x + 10) + tm.assert_frame_equal(result, df) + + result = df["col1"].transform(lambda x: x + 10) + tm.assert_series_equal(result, df["col1"]) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/test_invalid_arg.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/test_invalid_arg.py new file mode 100644 index 0000000000000000000000000000000000000000..68f3fe36546a09404f4f390ace4f6266c1512abe --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/test_invalid_arg.py @@ -0,0 +1,363 @@ +# Tests specifically aimed at detecting bad arguments. +# This file is organized by reason for exception. +# 1. always invalid argument values +# 2. missing column(s) +# 3. incompatible ops/dtype/args/kwargs +# 4. invalid result shape/type +# If your test does not fit into one of these categories, add to this list. + +from itertools import chain +import re + +import numpy as np +import pytest + +from pandas.errors import SpecificationError + +from pandas import ( + DataFrame, + Series, + date_range, +) +import pandas._testing as tm + + +@pytest.mark.parametrize("result_type", ["foo", 1]) +def test_result_type_error(result_type): + # allowed result_type + df = DataFrame( + np.tile(np.arange(3, dtype="int64"), 6).reshape(6, -1) + 1, + columns=["A", "B", "C"], + ) + + msg = ( + "invalid value for result_type, must be one of " + "{None, 'reduce', 'broadcast', 'expand'}" + ) + with pytest.raises(ValueError, match=msg): + df.apply(lambda x: [1, 2, 3], axis=1, result_type=result_type) + + +def test_apply_invalid_axis_value(): + df = DataFrame([[1, 2, 3], [4, 5, 6], [7, 8, 9]], index=["a", "a", "c"]) + msg = "No axis named 2 for object type DataFrame" + with pytest.raises(ValueError, match=msg): + df.apply(lambda x: x, 2) + + +def test_agg_raises(): + # GH 26513 + df = DataFrame({"A": [0, 1], "B": [1, 2]}) + msg = "Must provide" + + with pytest.raises(TypeError, match=msg): + df.agg() + + +def test_map_with_invalid_na_action_raises(): + # https://github.com/pandas-dev/pandas/issues/32815 + s = Series([1, 2, 3]) + msg = "na_action must either be 'ignore' or None" + with pytest.raises(ValueError, match=msg): + s.map(lambda x: x, na_action="____") + + +@pytest.mark.parametrize("input_na_action", ["____", True]) +def test_map_arg_is_dict_with_invalid_na_action_raises(input_na_action): + # https://github.com/pandas-dev/pandas/issues/46588 + s = Series([1, 2, 3]) + msg = f"na_action must either be 'ignore' or None, {input_na_action} was passed" + with pytest.raises(ValueError, match=msg): + s.map({1: 2}, na_action=input_na_action) + + +@pytest.mark.parametrize("method", ["apply", "agg", "transform"]) +@pytest.mark.parametrize("func", [{"A": {"B": "sum"}}, {"A": {"B": ["sum"]}}]) +def test_nested_renamer(frame_or_series, method, func): + # GH 35964 + obj = frame_or_series({"A": [1]}) + match = "nested renamer is not supported" + with pytest.raises(SpecificationError, match=match): + getattr(obj, method)(func) + + +@pytest.mark.parametrize( + "renamer", + [{"foo": ["min", "max"]}, {"foo": ["min", "max"], "bar": ["sum", "mean"]}], +) +def test_series_nested_renamer(renamer): + s = Series(range(6), dtype="int64", name="series") + msg = "nested renamer is not supported" + with pytest.raises(SpecificationError, match=msg): + s.agg(renamer) + + +def test_apply_dict_depr(): + tsdf = DataFrame( + np.random.default_rng(2).standard_normal((10, 3)), + columns=["A", "B", "C"], + index=date_range("1/1/2000", periods=10), + ) + msg = "nested renamer is not supported" + with pytest.raises(SpecificationError, match=msg): + tsdf.A.agg({"foo": ["sum", "mean"]}) + + +@pytest.mark.parametrize("method", ["agg", "transform"]) +def test_dict_nested_renaming_depr(method): + df = DataFrame({"A": range(5), "B": 5}) + + # nested renaming + msg = r"nested renamer is not supported" + with pytest.raises(SpecificationError, match=msg): + getattr(df, method)({"A": {"foo": "min"}, "B": {"bar": "max"}}) + + +@pytest.mark.parametrize("method", ["apply", "agg", "transform"]) +@pytest.mark.parametrize("func", [{"B": "sum"}, {"B": ["sum"]}]) +def test_missing_column(method, func): + # GH 40004 + obj = DataFrame({"A": [1]}) + match = re.escape("Column(s) ['B'] do not exist") + with pytest.raises(KeyError, match=match): + getattr(obj, method)(func) + + +def test_transform_mixed_column_name_dtypes(): + # GH39025 + df = DataFrame({"a": ["1"]}) + msg = r"Column\(s\) \[1, 'b'\] do not exist" + with pytest.raises(KeyError, match=msg): + df.transform({"a": int, 1: str, "b": int}) + + +@pytest.mark.parametrize( + "how, args", [("pct_change", ()), ("nsmallest", (1, ["a", "b"])), ("tail", 1)] +) +def test_apply_str_axis_1_raises(how, args): + # GH 39211 - some ops don't support axis=1 + df = DataFrame({"a": [1, 2], "b": [3, 4]}) + msg = f"Operation {how} does not support axis=1" + with pytest.raises(ValueError, match=msg): + df.apply(how, axis=1, args=args) + + +def test_transform_axis_1_raises(): + # GH 35964 + msg = "No axis named 1 for object type Series" + with pytest.raises(ValueError, match=msg): + Series([1]).transform("sum", axis=1) + + +def test_apply_modify_traceback(): + data = DataFrame( + { + "A": [ + "foo", + "foo", + "foo", + "foo", + "bar", + "bar", + "bar", + "bar", + "foo", + "foo", + "foo", + ], + "B": [ + "one", + "one", + "one", + "two", + "one", + "one", + "one", + "two", + "two", + "two", + "one", + ], + "C": [ + "dull", + "dull", + "shiny", + "dull", + "dull", + "shiny", + "shiny", + "dull", + "shiny", + "shiny", + "shiny", + ], + "D": np.random.default_rng(2).standard_normal(11), + "E": np.random.default_rng(2).standard_normal(11), + "F": np.random.default_rng(2).standard_normal(11), + } + ) + + data.loc[4, "C"] = np.nan + + def transform(row): + if row["C"].startswith("shin") and row["A"] == "foo": + row["D"] = 7 + return row + + msg = "'float' object has no attribute 'startswith'" + with pytest.raises(AttributeError, match=msg): + data.apply(transform, axis=1) + + +@pytest.mark.parametrize( + "df, func, expected", + tm.get_cython_table_params( + DataFrame([["a", "b"], ["b", "a"]]), [["cumprod", TypeError]] + ), +) +def test_agg_cython_table_raises_frame(df, func, expected, axis, using_infer_string): + # GH 21224 + if using_infer_string: + expected = (expected, NotImplementedError) + + msg = ( + "can't multiply sequence by non-int of type 'str'" + "|cannot perform cumprod with type str" # NotImplementedError python backend + "|operation 'cumprod' not supported for dtype 'str'" # TypeError pyarrow + ) + warn = None if isinstance(func, str) else FutureWarning + with pytest.raises(expected, match=msg): + with tm.assert_produces_warning(warn, match="using DataFrame.cumprod"): + df.agg(func, axis=axis) + + +@pytest.mark.parametrize( + "series, func, expected", + chain( + tm.get_cython_table_params( + Series("a b c".split()), + [ + ("mean", TypeError), # mean raises TypeError + ("prod", TypeError), + ("std", TypeError), + ("var", TypeError), + ("median", TypeError), + ("cumprod", TypeError), + ], + ) + ), +) +def test_agg_cython_table_raises_series(series, func, expected, using_infer_string): + # GH21224 + msg = r"[Cc]ould not convert|can't multiply sequence by non-int of type" + if func == "median" or func is np.nanmedian or func is np.median: + msg = r"Cannot convert \['a' 'b' 'c'\] to numeric" + + if using_infer_string and func in ("cumprod", np.cumprod, np.nancumprod): + expected = (expected, NotImplementedError) + + msg = ( + msg + "|does not support|has no kernel|Cannot perform|cannot perform|operation" + ) + warn = None if isinstance(func, str) else FutureWarning + + with pytest.raises(expected, match=msg): + # e.g. Series('a b'.split()).cumprod() will raise + with tm.assert_produces_warning(warn, match="is currently using Series.*"): + series.agg(func) + + +def test_agg_none_to_type(): + # GH 40543 + df = DataFrame({"a": [None]}) + msg = re.escape("int() argument must be a string") + with pytest.raises(TypeError, match=msg): + df.agg({"a": lambda x: int(x.iloc[0])}) + + +def test_transform_none_to_type(): + # GH#34377 + df = DataFrame({"a": [None]}) + msg = "argument must be a" + with pytest.raises(TypeError, match=msg): + df.transform({"a": lambda x: int(x.iloc[0])}) + + +@pytest.mark.parametrize( + "func", + [ + lambda x: np.array([1, 2]).reshape(-1, 2), + lambda x: [1, 2], + lambda x: Series([1, 2]), + ], +) +def test_apply_broadcast_error(func): + df = DataFrame( + np.tile(np.arange(3, dtype="int64"), 6).reshape(6, -1) + 1, + columns=["A", "B", "C"], + ) + + # > 1 ndim + msg = "too many dims to broadcast|cannot broadcast result" + with pytest.raises(ValueError, match=msg): + df.apply(func, axis=1, result_type="broadcast") + + +def test_transform_and_agg_err_agg(axis, float_frame): + # cannot both transform and agg + msg = "cannot combine transform and aggregation operations" + with pytest.raises(ValueError, match=msg): + with np.errstate(all="ignore"): + float_frame.agg(["max", "sqrt"], axis=axis) + + +@pytest.mark.filterwarnings("ignore::FutureWarning") # GH53325 +@pytest.mark.parametrize( + "func, msg", + [ + (["sqrt", "max"], "cannot combine transform and aggregation"), + ( + {"foo": np.sqrt, "bar": "sum"}, + "cannot perform both aggregation and transformation", + ), + ], +) +def test_transform_and_agg_err_series(string_series, func, msg): + # we are trying to transform with an aggregator + with pytest.raises(ValueError, match=msg): + with np.errstate(all="ignore"): + string_series.agg(func) + + +@pytest.mark.parametrize("func", [["max", "min"], ["max", "sqrt"]]) +def test_transform_wont_agg_frame(axis, float_frame, func): + # GH 35964 + # cannot both transform and agg + msg = "Function did not transform" + with pytest.raises(ValueError, match=msg): + float_frame.transform(func, axis=axis) + + +@pytest.mark.parametrize("func", [["min", "max"], ["sqrt", "max"]]) +def test_transform_wont_agg_series(string_series, func): + # GH 35964 + # we are trying to transform with an aggregator + msg = "Function did not transform" + + with pytest.raises(ValueError, match=msg): + string_series.transform(func) + + +@pytest.mark.parametrize( + "op_wrapper", [lambda x: x, lambda x: [x], lambda x: {"A": x}, lambda x: {"A": [x]}] +) +def test_transform_reducer_raises(all_reductions, frame_or_series, op_wrapper): + # GH 35964 + op = op_wrapper(all_reductions) + + obj = DataFrame({"A": [1, 2, 3]}) + obj = tm.get_obj(obj, frame_or_series) + + msg = "Function did not transform" + with pytest.raises(ValueError, match=msg): + obj.transform(op) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/test_numba.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/test_numba.py new file mode 100644 index 0000000000000000000000000000000000000000..c211073f758881fdd9e2acf72b30e86b9aa49cb2 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/test_numba.py @@ -0,0 +1,129 @@ +import numpy as np +import pytest + +from pandas.compat import is_platform_arm +import pandas.util._test_decorators as td + +import pandas as pd +from pandas import ( + DataFrame, + Index, +) +import pandas._testing as tm +from pandas.util.version import Version + +pytestmark = [td.skip_if_no("numba"), pytest.mark.single_cpu, pytest.mark.skipif()] + +numba = pytest.importorskip("numba") +pytestmark.append( + pytest.mark.skipif( + Version(numba.__version__) == Version("0.61") and is_platform_arm(), + reason=f"Segfaults on ARM platforms with numba {numba.__version__}", + ) +) + + +@pytest.fixture(params=[0, 1]) +def apply_axis(request): + return request.param + + +def test_numba_vs_python_noop(float_frame, apply_axis): + func = lambda x: x + result = float_frame.apply(func, engine="numba", axis=apply_axis) + expected = float_frame.apply(func, engine="python", axis=apply_axis) + tm.assert_frame_equal(result, expected) + + +def test_numba_vs_python_string_index(): + # GH#56189 + df = DataFrame( + 1, + index=Index(["a", "b"], dtype=pd.StringDtype(na_value=np.nan)), + columns=Index(["x", "y"], dtype=pd.StringDtype(na_value=np.nan)), + ) + func = lambda x: x + result = df.apply(func, engine="numba", axis=0) + expected = df.apply(func, engine="python", axis=0) + tm.assert_frame_equal( + result, expected, check_column_type=False, check_index_type=False + ) + + +def test_numba_vs_python_indexing(): + frame = DataFrame( + {"a": [1, 2, 3], "b": [4, 5, 6], "c": [7.0, 8.0, 9.0]}, + index=Index(["A", "B", "C"]), + ) + row_func = lambda x: x["c"] + result = frame.apply(row_func, engine="numba", axis=1) + expected = frame.apply(row_func, engine="python", axis=1) + tm.assert_series_equal(result, expected) + + col_func = lambda x: x["A"] + result = frame.apply(col_func, engine="numba", axis=0) + expected = frame.apply(col_func, engine="python", axis=0) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "reduction", + [lambda x: x.mean(), lambda x: x.min(), lambda x: x.max(), lambda x: x.sum()], +) +def test_numba_vs_python_reductions(reduction, apply_axis): + df = DataFrame(np.ones((4, 4), dtype=np.float64)) + result = df.apply(reduction, engine="numba", axis=apply_axis) + expected = df.apply(reduction, engine="python", axis=apply_axis) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("colnames", [[1, 2, 3], [1.0, 2.0, 3.0]]) +def test_numba_numeric_colnames(colnames): + # Check that numeric column names lower properly and can be indxed on + df = DataFrame( + np.array([[1, 2, 3], [4, 5, 6], [7, 8, 9]], dtype=np.int64), columns=colnames + ) + first_col = colnames[0] + f = lambda x: x[first_col] # Get the first column + result = df.apply(f, engine="numba", axis=1) + expected = df.apply(f, engine="python", axis=1) + tm.assert_series_equal(result, expected) + + +def test_numba_parallel_unsupported(float_frame): + f = lambda x: x + with pytest.raises( + NotImplementedError, + match="Parallel apply is not supported when raw=False and engine='numba'", + ): + float_frame.apply(f, engine="numba", engine_kwargs={"parallel": True}) + + +def test_numba_nonunique_unsupported(apply_axis): + f = lambda x: x + df = DataFrame({"a": [1, 2]}, index=Index(["a", "a"])) + with pytest.raises( + NotImplementedError, + match="The index/columns must be unique when raw=False and engine='numba'", + ): + df.apply(f, engine="numba", axis=apply_axis) + + +def test_numba_unsupported_dtypes(apply_axis): + pytest.importorskip("pyarrow") + f = lambda x: x + df = DataFrame({"a": [1, 2], "b": ["a", "b"], "c": [4, 5]}) + df["c"] = df["c"].astype("double[pyarrow]") + + with pytest.raises( + ValueError, + match="Column b must have a numeric dtype. Found 'object|str' instead", + ): + df.apply(f, engine="numba", axis=apply_axis) + + with pytest.raises( + ValueError, + match="Column c is backed by an extension array, " + "which is not supported by the numba engine.", + ): + df["c"].to_frame().apply(f, engine="numba", axis=apply_axis) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/test_series_apply.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/test_series_apply.py new file mode 100644 index 0000000000000000000000000000000000000000..69f84ca74ab0b44e177a4a79a1ef5a6c893efbe8 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/test_series_apply.py @@ -0,0 +1,701 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + DataFrame, + Index, + MultiIndex, + Series, + concat, + date_range, + timedelta_range, +) +import pandas._testing as tm +from pandas.tests.apply.common import series_transform_kernels + + +@pytest.fixture(params=[False, "compat"]) +def by_row(request): + return request.param + + +def test_series_map_box_timedelta(by_row): + # GH#11349 + ser = Series(timedelta_range("1 day 1 s", periods=3, freq="h")) + + def f(x): + return x.total_seconds() if by_row else x.dt.total_seconds() + + result = ser.apply(f, by_row=by_row) + + expected = ser.map(lambda x: x.total_seconds()) + tm.assert_series_equal(result, expected) + + expected = Series([86401.0, 90001.0, 93601.0]) + tm.assert_series_equal(result, expected) + + +def test_apply(datetime_series, by_row): + result = datetime_series.apply(np.sqrt, by_row=by_row) + with np.errstate(all="ignore"): + expected = np.sqrt(datetime_series) + tm.assert_series_equal(result, expected) + + # element-wise apply (ufunc) + result = datetime_series.apply(np.exp, by_row=by_row) + expected = np.exp(datetime_series) + tm.assert_series_equal(result, expected) + + # empty series + s = Series(dtype=object, name="foo", index=Index([], name="bar")) + rs = s.apply(lambda x: x, by_row=by_row) + tm.assert_series_equal(s, rs) + + # check all metadata (GH 9322) + assert s is not rs + assert s.index is rs.index + assert s.dtype == rs.dtype + assert s.name == rs.name + + # index but no data + s = Series(index=[1, 2, 3], dtype=np.float64) + rs = s.apply(lambda x: x, by_row=by_row) + tm.assert_series_equal(s, rs) + + +def test_apply_map_same_length_inference_bug(): + s = Series([1, 2]) + + def f(x): + return (x, x + 1) + + result = s.apply(f, by_row="compat") + expected = s.map(f) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("convert_dtype", [True, False]) +def test_apply_convert_dtype_deprecated(convert_dtype): + ser = Series(np.random.default_rng(2).standard_normal(10)) + + def func(x): + return x if x > 0 else np.nan + + with tm.assert_produces_warning(FutureWarning): + ser.apply(func, convert_dtype=convert_dtype, by_row="compat") + + +def test_apply_args(): + s = Series(["foo,bar"]) + + result = s.apply(str.split, args=(",",)) + assert result[0] == ["foo", "bar"] + assert isinstance(result[0], list) + + +@pytest.mark.parametrize( + "args, kwargs, increment", + [((), {}, 0), ((), {"a": 1}, 1), ((2, 3), {}, 32), ((1,), {"c": 2}, 201)], +) +def test_agg_args(args, kwargs, increment): + # GH 43357 + def f(x, a=0, b=0, c=0): + return x + a + 10 * b + 100 * c + + s = Series([1, 2]) + msg = ( + "in Series.agg cannot aggregate and has been deprecated. " + "Use Series.transform to keep behavior unchanged." + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + result = s.agg(f, 0, *args, **kwargs) + expected = s + increment + tm.assert_series_equal(result, expected) + + +def test_agg_mapping_func_deprecated(): + # GH 53325 + s = Series([1, 2, 3]) + + def foo1(x, a=1, c=0): + return x + a + c + + def foo2(x, b=2, c=0): + return x + b + c + + msg = "using .+ in Series.agg cannot aggregate and" + with tm.assert_produces_warning(FutureWarning, match=msg): + s.agg(foo1, 0, 3, c=4) + with tm.assert_produces_warning(FutureWarning, match=msg): + s.agg([foo1, foo2], 0, 3, c=4) + with tm.assert_produces_warning(FutureWarning, match=msg): + s.agg({"a": foo1, "b": foo2}, 0, 3, c=4) + + +def test_series_apply_map_box_timestamps(by_row): + # GH#2689, GH#2627 + ser = Series(date_range("1/1/2000", periods=10)) + + def func(x): + return (x.hour, x.day, x.month) + + if not by_row: + msg = "Series' object has no attribute 'hour'" + with pytest.raises(AttributeError, match=msg): + ser.apply(func, by_row=by_row) + return + + result = ser.apply(func, by_row=by_row) + expected = ser.map(func) + tm.assert_series_equal(result, expected) + + +def test_apply_box_dt64(): + # ufunc will not be boxed. Same test cases as the test_map_box + vals = [pd.Timestamp("2011-01-01"), pd.Timestamp("2011-01-02")] + ser = Series(vals, dtype="M8[ns]") + assert ser.dtype == "datetime64[ns]" + # boxed value must be Timestamp instance + res = ser.apply(lambda x: f"{type(x).__name__}_{x.day}_{x.tz}", by_row="compat") + exp = Series(["Timestamp_1_None", "Timestamp_2_None"]) + tm.assert_series_equal(res, exp) + + +def test_apply_box_dt64tz(): + vals = [ + pd.Timestamp("2011-01-01", tz="US/Eastern"), + pd.Timestamp("2011-01-02", tz="US/Eastern"), + ] + ser = Series(vals, dtype="M8[ns, US/Eastern]") + assert ser.dtype == "datetime64[ns, US/Eastern]" + res = ser.apply(lambda x: f"{type(x).__name__}_{x.day}_{x.tz}", by_row="compat") + exp = Series(["Timestamp_1_US/Eastern", "Timestamp_2_US/Eastern"]) + tm.assert_series_equal(res, exp) + + +def test_apply_box_td64(): + # timedelta + vals = [pd.Timedelta("1 days"), pd.Timedelta("2 days")] + ser = Series(vals) + assert ser.dtype == "timedelta64[ns]" + res = ser.apply(lambda x: f"{type(x).__name__}_{x.days}", by_row="compat") + exp = Series(["Timedelta_1", "Timedelta_2"]) + tm.assert_series_equal(res, exp) + + +def test_apply_box_period(): + # period + vals = [pd.Period("2011-01-01", freq="M"), pd.Period("2011-01-02", freq="M")] + ser = Series(vals) + assert ser.dtype == "Period[M]" + res = ser.apply(lambda x: f"{type(x).__name__}_{x.freqstr}", by_row="compat") + exp = Series(["Period_M", "Period_M"]) + tm.assert_series_equal(res, exp) + + +def test_apply_datetimetz(by_row): + values = date_range("2011-01-01", "2011-01-02", freq="h").tz_localize("Asia/Tokyo") + s = Series(values, name="XX") + + result = s.apply(lambda x: x + pd.offsets.Day(), by_row=by_row) + exp_values = date_range("2011-01-02", "2011-01-03", freq="h").tz_localize( + "Asia/Tokyo" + ) + exp = Series(exp_values, name="XX") + tm.assert_series_equal(result, exp) + + result = s.apply(lambda x: x.hour if by_row else x.dt.hour, by_row=by_row) + exp = Series(list(range(24)) + [0], name="XX", dtype="int64" if by_row else "int32") + tm.assert_series_equal(result, exp) + + # not vectorized + def f(x): + return str(x.tz) if by_row else str(x.dt.tz) + + result = s.apply(f, by_row=by_row) + if by_row: + exp = Series(["Asia/Tokyo"] * 25, name="XX") + tm.assert_series_equal(result, exp) + else: + assert result == "Asia/Tokyo" + + +def test_apply_categorical(by_row, using_infer_string): + values = pd.Categorical(list("ABBABCD"), categories=list("DCBA"), ordered=True) + ser = Series(values, name="XX", index=list("abcdefg")) + + if not by_row: + msg = "Series' object has no attribute 'lower" + with pytest.raises(AttributeError, match=msg): + ser.apply(lambda x: x.lower(), by_row=by_row) + assert ser.apply(lambda x: "A", by_row=by_row) == "A" + return + + result = ser.apply(lambda x: x.lower(), by_row=by_row) + + # should be categorical dtype when the number of categories are + # the same + values = pd.Categorical(list("abbabcd"), categories=list("dcba"), ordered=True) + exp = Series(values, name="XX", index=list("abcdefg")) + tm.assert_series_equal(result, exp) + tm.assert_categorical_equal(result.values, exp.values) + + result = ser.apply(lambda x: "A") + exp = Series(["A"] * 7, name="XX", index=list("abcdefg")) + tm.assert_series_equal(result, exp) + assert result.dtype == object if not using_infer_string else "str" + + +@pytest.mark.parametrize("series", [["1-1", "1-1", np.nan], ["1-1", "1-2", np.nan]]) +def test_apply_categorical_with_nan_values(series, by_row): + # GH 20714 bug fixed in: GH 24275 + s = Series(series, dtype="category") + if not by_row: + msg = "'Series' object has no attribute 'split'" + with pytest.raises(AttributeError, match=msg): + s.apply(lambda x: x.split("-")[0], by_row=by_row) + return + + result = s.apply(lambda x: x.split("-")[0], by_row=by_row) + result = result.astype(object) + expected = Series(["1", "1", np.nan], dtype="category") + expected = expected.astype(object) + tm.assert_series_equal(result, expected) + + +def test_apply_empty_integer_series_with_datetime_index(by_row): + # GH 21245 + s = Series([], index=date_range(start="2018-01-01", periods=0), dtype=int) + result = s.apply(lambda x: x, by_row=by_row) + tm.assert_series_equal(result, s) + + +def test_apply_dataframe_iloc(): + uintDF = DataFrame(np.uint64([1, 2, 3, 4, 5]), columns=["Numbers"]) + indexDF = DataFrame([2, 3, 2, 1, 2], columns=["Indices"]) + + def retrieve(targetRow, targetDF): + val = targetDF["Numbers"].iloc[targetRow] + return val + + result = indexDF["Indices"].apply(retrieve, args=(uintDF,)) + expected = Series([3, 4, 3, 2, 3], name="Indices", dtype="uint64") + tm.assert_series_equal(result, expected) + + +def test_transform(string_series, by_row): + # transforming functions + + with np.errstate(all="ignore"): + f_sqrt = np.sqrt(string_series) + f_abs = np.abs(string_series) + + # ufunc + result = string_series.apply(np.sqrt, by_row=by_row) + expected = f_sqrt.copy() + tm.assert_series_equal(result, expected) + + # list-like + result = string_series.apply([np.sqrt], by_row=by_row) + expected = f_sqrt.to_frame().copy() + expected.columns = ["sqrt"] + tm.assert_frame_equal(result, expected) + + result = string_series.apply(["sqrt"], by_row=by_row) + tm.assert_frame_equal(result, expected) + + # multiple items in list + # these are in the order as if we are applying both functions per + # series and then concatting + expected = concat([f_sqrt, f_abs], axis=1) + expected.columns = ["sqrt", "absolute"] + result = string_series.apply([np.sqrt, np.abs], by_row=by_row) + tm.assert_frame_equal(result, expected) + + # dict, provide renaming + expected = concat([f_sqrt, f_abs], axis=1) + expected.columns = ["foo", "bar"] + expected = expected.unstack().rename("series") + + result = string_series.apply({"foo": np.sqrt, "bar": np.abs}, by_row=by_row) + tm.assert_series_equal(result.reindex_like(expected), expected) + + +@pytest.mark.parametrize("op", series_transform_kernels) +def test_transform_partial_failure(op, request): + # GH 35964 + if op in ("ffill", "bfill", "pad", "backfill", "shift"): + request.applymarker( + pytest.mark.xfail(reason=f"{op} is successful on any dtype") + ) + + # Using object makes most transform kernels fail + ser = Series(3 * [object]) + + if op in ("fillna", "ngroup"): + error = ValueError + msg = "Transform function failed" + else: + error = TypeError + msg = "|".join( + [ + "not supported between instances of 'type' and 'type'", + "unsupported operand type", + ] + ) + + with pytest.raises(error, match=msg): + ser.transform([op, "shift"]) + + with pytest.raises(error, match=msg): + ser.transform({"A": op, "B": "shift"}) + + with pytest.raises(error, match=msg): + ser.transform({"A": [op], "B": ["shift"]}) + + with pytest.raises(error, match=msg): + ser.transform({"A": [op, "shift"], "B": [op]}) + + +def test_transform_partial_failure_valueerror(): + # GH 40211 + def noop(x): + return x + + def raising_op(_): + raise ValueError + + ser = Series(3 * [object]) + msg = "Transform function failed" + + with pytest.raises(ValueError, match=msg): + ser.transform([noop, raising_op]) + + with pytest.raises(ValueError, match=msg): + ser.transform({"A": raising_op, "B": noop}) + + with pytest.raises(ValueError, match=msg): + ser.transform({"A": [raising_op], "B": [noop]}) + + with pytest.raises(ValueError, match=msg): + ser.transform({"A": [noop, raising_op], "B": [noop]}) + + +def test_demo(): + # demonstration tests + s = Series(range(6), dtype="int64", name="series") + + result = s.agg(["min", "max"]) + expected = Series([0, 5], index=["min", "max"], name="series") + tm.assert_series_equal(result, expected) + + result = s.agg({"foo": "min"}) + expected = Series([0], index=["foo"], name="series") + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("func", [str, lambda x: str(x)]) +def test_apply_map_evaluate_lambdas_the_same(string_series, func, by_row): + # test that we are evaluating row-by-row first if by_row="compat" + # else vectorized evaluation + result = string_series.apply(func, by_row=by_row) + + if by_row: + expected = string_series.map(func) + tm.assert_series_equal(result, expected) + else: + assert result == str(string_series) + + +def test_agg_evaluate_lambdas(string_series): + # GH53325 + # in the future, the result will be a Series class. + + with tm.assert_produces_warning(FutureWarning): + result = string_series.agg(lambda x: type(x)) + assert isinstance(result, Series) and len(result) == len(string_series) + + with tm.assert_produces_warning(FutureWarning): + result = string_series.agg(type) + assert isinstance(result, Series) and len(result) == len(string_series) + + +@pytest.mark.parametrize("op_name", ["agg", "apply"]) +def test_with_nested_series(datetime_series, op_name): + # GH 2316 + # .agg with a reducer and a transform, what to do + msg = "cannot aggregate" + warning = FutureWarning if op_name == "agg" else None + with tm.assert_produces_warning(warning, match=msg): + # GH52123 + result = getattr(datetime_series, op_name)( + lambda x: Series([x, x**2], index=["x", "x^2"]) + ) + expected = DataFrame({"x": datetime_series, "x^2": datetime_series**2}) + tm.assert_frame_equal(result, expected) + + with tm.assert_produces_warning(FutureWarning, match=msg): + result = datetime_series.agg(lambda x: Series([x, x**2], index=["x", "x^2"])) + tm.assert_frame_equal(result, expected) + + +def test_replicate_describe(string_series): + # this also tests a result set that is all scalars + expected = string_series.describe() + result = string_series.apply( + { + "count": "count", + "mean": "mean", + "std": "std", + "min": "min", + "25%": lambda x: x.quantile(0.25), + "50%": "median", + "75%": lambda x: x.quantile(0.75), + "max": "max", + }, + ) + tm.assert_series_equal(result, expected) + + +def test_reduce(string_series): + # reductions with named functions + result = string_series.agg(["sum", "mean"]) + expected = Series( + [string_series.sum(), string_series.mean()], + ["sum", "mean"], + name=string_series.name, + ) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "how, kwds", + [("agg", {}), ("apply", {"by_row": "compat"}), ("apply", {"by_row": False})], +) +def test_non_callable_aggregates(how, kwds): + # test agg using non-callable series attributes + # GH 39116 - expand to apply + s = Series([1, 2, None]) + + # Calling agg w/ just a string arg same as calling s.arg + result = getattr(s, how)("size", **kwds) + expected = s.size + assert result == expected + + # test when mixed w/ callable reducers + result = getattr(s, how)(["size", "count", "mean"], **kwds) + expected = Series({"size": 3.0, "count": 2.0, "mean": 1.5}) + tm.assert_series_equal(result, expected) + + result = getattr(s, how)({"size": "size", "count": "count", "mean": "mean"}, **kwds) + tm.assert_series_equal(result, expected) + + +def test_series_apply_no_suffix_index(by_row): + # GH36189 + s = Series([4] * 3) + result = s.apply(["sum", lambda x: x.sum(), lambda x: x.sum()], by_row=by_row) + expected = Series([12, 12, 12], index=["sum", "", ""]) + + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "dti,exp", + [ + ( + Series([1, 2], index=pd.DatetimeIndex([0, 31536000000])), + DataFrame(np.repeat([[1, 2]], 2, axis=0), dtype="int64"), + ), + ( + Series( + np.arange(10, dtype=np.float64), + index=date_range("2020-01-01", periods=10), + name="ts", + ), + DataFrame(np.repeat([[1, 2]], 10, axis=0), dtype="int64"), + ), + ], +) +@pytest.mark.parametrize("aware", [True, False]) +def test_apply_series_on_date_time_index_aware_series(dti, exp, aware): + # GH 25959 + # Calling apply on a localized time series should not cause an error + if aware: + index = dti.tz_localize("UTC").index + else: + index = dti.index + result = Series(index).apply(lambda x: Series([1, 2])) + tm.assert_frame_equal(result, exp) + + +@pytest.mark.parametrize( + "by_row, expected", [("compat", Series(np.ones(10), dtype="int64")), (False, 1)] +) +def test_apply_scalar_on_date_time_index_aware_series(by_row, expected): + # GH 25959 + # Calling apply on a localized time series should not cause an error + series = Series( + np.arange(10, dtype=np.float64), + index=date_range("2020-01-01", periods=10, tz="UTC"), + ) + result = Series(series.index).apply(lambda x: 1, by_row=by_row) + tm.assert_equal(result, expected) + + +def test_apply_to_timedelta(by_row): + list_of_valid_strings = ["00:00:01", "00:00:02"] + a = pd.to_timedelta(list_of_valid_strings) + b = Series(list_of_valid_strings).apply(pd.to_timedelta, by_row=by_row) + tm.assert_series_equal(Series(a), b) + + list_of_strings = ["00:00:01", np.nan, pd.NaT, pd.NaT] + + a = pd.to_timedelta(list_of_strings) + ser = Series(list_of_strings) + b = ser.apply(pd.to_timedelta, by_row=by_row) + tm.assert_series_equal(Series(a), b) + + +@pytest.mark.parametrize( + "ops, names", + [ + ([np.sum], ["sum"]), + ([np.sum, np.mean], ["sum", "mean"]), + (np.array([np.sum]), ["sum"]), + (np.array([np.sum, np.mean]), ["sum", "mean"]), + ], +) +@pytest.mark.parametrize( + "how, kwargs", + [["agg", {}], ["apply", {"by_row": "compat"}], ["apply", {"by_row": False}]], +) +def test_apply_listlike_reducer(string_series, ops, names, how, kwargs): + # GH 39140 + expected = Series({name: op(string_series) for name, op in zip(names, ops)}) + expected.name = "series" + warn = FutureWarning if how == "agg" else None + msg = f"using Series.[{'|'.join(names)}]" + with tm.assert_produces_warning(warn, match=msg): + result = getattr(string_series, how)(ops, **kwargs) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "ops", + [ + {"A": np.sum}, + {"A": np.sum, "B": np.mean}, + Series({"A": np.sum}), + Series({"A": np.sum, "B": np.mean}), + ], +) +@pytest.mark.parametrize( + "how, kwargs", + [["agg", {}], ["apply", {"by_row": "compat"}], ["apply", {"by_row": False}]], +) +def test_apply_dictlike_reducer(string_series, ops, how, kwargs, by_row): + # GH 39140 + expected = Series({name: op(string_series) for name, op in ops.items()}) + expected.name = string_series.name + warn = FutureWarning if how == "agg" else None + msg = "using Series.[sum|mean]" + with tm.assert_produces_warning(warn, match=msg): + result = getattr(string_series, how)(ops, **kwargs) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "ops, names", + [ + ([np.sqrt], ["sqrt"]), + ([np.abs, np.sqrt], ["absolute", "sqrt"]), + (np.array([np.sqrt]), ["sqrt"]), + (np.array([np.abs, np.sqrt]), ["absolute", "sqrt"]), + ], +) +def test_apply_listlike_transformer(string_series, ops, names, by_row): + # GH 39140 + with np.errstate(all="ignore"): + expected = concat([op(string_series) for op in ops], axis=1) + expected.columns = names + result = string_series.apply(ops, by_row=by_row) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "ops, expected", + [ + ([lambda x: x], DataFrame({"": [1, 2, 3]})), + ([lambda x: x.sum()], Series([6], index=[""])), + ], +) +def test_apply_listlike_lambda(ops, expected, by_row): + # GH53400 + ser = Series([1, 2, 3]) + result = ser.apply(ops, by_row=by_row) + tm.assert_equal(result, expected) + + +@pytest.mark.parametrize( + "ops", + [ + {"A": np.sqrt}, + {"A": np.sqrt, "B": np.exp}, + Series({"A": np.sqrt}), + Series({"A": np.sqrt, "B": np.exp}), + ], +) +def test_apply_dictlike_transformer(string_series, ops, by_row): + # GH 39140 + with np.errstate(all="ignore"): + expected = concat({name: op(string_series) for name, op in ops.items()}) + expected.name = string_series.name + result = string_series.apply(ops, by_row=by_row) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "ops, expected", + [ + ( + {"a": lambda x: x}, + Series([1, 2, 3], index=MultiIndex.from_arrays([["a"] * 3, range(3)])), + ), + ({"a": lambda x: x.sum()}, Series([6], index=["a"])), + ], +) +def test_apply_dictlike_lambda(ops, by_row, expected): + # GH53400 + ser = Series([1, 2, 3]) + result = ser.apply(ops, by_row=by_row) + tm.assert_equal(result, expected) + + +def test_apply_retains_column_name(by_row): + # GH 16380 + df = DataFrame({"x": range(3)}, Index(range(3), name="x")) + result = df.x.apply(lambda x: Series(range(x + 1), Index(range(x + 1), name="y"))) + expected = DataFrame( + [[0.0, np.nan, np.nan], [0.0, 1.0, np.nan], [0.0, 1.0, 2.0]], + columns=Index(range(3), name="y"), + index=Index(range(3), name="x"), + ) + tm.assert_frame_equal(result, expected) + + +def test_apply_type(): + # GH 46719 + s = Series([3, "string", float], index=["a", "b", "c"]) + result = s.apply(type) + expected = Series([int, str, type], index=["a", "b", "c"]) + tm.assert_series_equal(result, expected) + + +def test_series_apply_unpack_nested_data(): + # GH#55189 + ser = Series([[1, 2, 3], [4, 5, 6, 7]]) + result = ser.apply(lambda x: Series(x)) + expected = DataFrame({0: [1.0, 4.0], 1: [2.0, 5.0], 2: [3.0, 6.0], 3: [np.nan, 7]}) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/test_series_apply_relabeling.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/test_series_apply_relabeling.py new file mode 100644 index 0000000000000000000000000000000000000000..cdfa054f91c9b67261d715cd7812a53d1b2d4b2f --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/test_series_apply_relabeling.py @@ -0,0 +1,39 @@ +import pandas as pd +import pandas._testing as tm + + +def test_relabel_no_duplicated_method(): + # this is to test there is no duplicated method used in agg + df = pd.DataFrame({"A": [1, 2, 1, 2], "B": [1, 2, 3, 4]}) + + result = df["A"].agg(foo="sum") + expected = df["A"].agg({"foo": "sum"}) + tm.assert_series_equal(result, expected) + + result = df["B"].agg(foo="min", bar="max") + expected = df["B"].agg({"foo": "min", "bar": "max"}) + tm.assert_series_equal(result, expected) + + msg = "using Series.[sum|min|max]" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df["B"].agg(foo=sum, bar=min, cat="max") + msg = "using Series.[sum|min|max]" + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = df["B"].agg({"foo": sum, "bar": min, "cat": "max"}) + tm.assert_series_equal(result, expected) + + +def test_relabel_duplicated_method(): + # this is to test with nested renaming, duplicated method can be used + # if they are assigned with different new names + df = pd.DataFrame({"A": [1, 2, 1, 2], "B": [1, 2, 3, 4]}) + + result = df["A"].agg(foo="sum", bar="sum") + expected = pd.Series([6, 6], index=["foo", "bar"], name="A") + tm.assert_series_equal(result, expected) + + msg = "using Series.min" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df["B"].agg(foo=min, bar="min") + expected = pd.Series([1, 1], index=["foo", "bar"], name="B") + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/test_series_transform.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/test_series_transform.py new file mode 100644 index 0000000000000000000000000000000000000000..82592c4711ece5a7f4b6d421d743e1adbd78c345 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/test_series_transform.py @@ -0,0 +1,84 @@ +import numpy as np +import pytest + +from pandas import ( + DataFrame, + MultiIndex, + Series, + concat, +) +import pandas._testing as tm + + +@pytest.mark.parametrize( + "args, kwargs, increment", + [((), {}, 0), ((), {"a": 1}, 1), ((2, 3), {}, 32), ((1,), {"c": 2}, 201)], +) +def test_agg_args(args, kwargs, increment): + # GH 43357 + def f(x, a=0, b=0, c=0): + return x + a + 10 * b + 100 * c + + s = Series([1, 2]) + result = s.transform(f, 0, *args, **kwargs) + expected = s + increment + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "ops, names", + [ + ([np.sqrt], ["sqrt"]), + ([np.abs, np.sqrt], ["absolute", "sqrt"]), + (np.array([np.sqrt]), ["sqrt"]), + (np.array([np.abs, np.sqrt]), ["absolute", "sqrt"]), + ], +) +def test_transform_listlike(string_series, ops, names): + # GH 35964 + with np.errstate(all="ignore"): + expected = concat([op(string_series) for op in ops], axis=1) + expected.columns = names + result = string_series.transform(ops) + tm.assert_frame_equal(result, expected) + + +def test_transform_listlike_func_with_args(): + # GH 50624 + + s = Series([1, 2, 3]) + + def foo1(x, a=1, c=0): + return x + a + c + + def foo2(x, b=2, c=0): + return x + b + c + + msg = r"foo1\(\) got an unexpected keyword argument 'b'" + with pytest.raises(TypeError, match=msg): + s.transform([foo1, foo2], 0, 3, b=3, c=4) + + result = s.transform([foo1, foo2], 0, 3, c=4) + expected = DataFrame({"foo1": [8, 9, 10], "foo2": [8, 9, 10]}) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("box", [dict, Series]) +def test_transform_dictlike(string_series, box): + # GH 35964 + with np.errstate(all="ignore"): + expected = concat([np.sqrt(string_series), np.abs(string_series)], axis=1) + expected.columns = ["foo", "bar"] + result = string_series.transform(box({"foo": np.sqrt, "bar": np.abs})) + tm.assert_frame_equal(result, expected) + + +def test_transform_dictlike_mixed(): + # GH 40018 - mix of lists and non-lists in values of a dictionary + df = Series([1, 4]) + result = df.transform({"b": ["sqrt", "abs"], "c": "sqrt"}) + expected = DataFrame( + [[1.0, 1, 1.0], [2.0, 4, 2.0]], + columns=MultiIndex([("b", "c"), ("sqrt", "abs")], [(0, 0, 1), (0, 1, 0)]), + ) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/test_str.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/test_str.py new file mode 100644 index 0000000000000000000000000000000000000000..17e8322dc40e1ef0e65ed6d63a6e4af3a373e29b --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/apply/test_str.py @@ -0,0 +1,326 @@ +from itertools import chain +import operator + +import numpy as np +import pytest + +from pandas.core.dtypes.common import is_number + +from pandas import ( + DataFrame, + Series, +) +import pandas._testing as tm +from pandas.tests.apply.common import ( + frame_transform_kernels, + series_transform_kernels, +) + + +@pytest.mark.parametrize("func", ["sum", "mean", "min", "max", "std"]) +@pytest.mark.parametrize( + "args,kwds", + [ + pytest.param([], {}, id="no_args_or_kwds"), + pytest.param([1], {}, id="axis_from_args"), + pytest.param([], {"axis": 1}, id="axis_from_kwds"), + pytest.param([], {"numeric_only": True}, id="optional_kwds"), + pytest.param([1, True], {"numeric_only": True}, id="args_and_kwds"), + ], +) +@pytest.mark.parametrize("how", ["agg", "apply"]) +def test_apply_with_string_funcs(request, float_frame, func, args, kwds, how): + if len(args) > 1 and how == "agg": + request.applymarker( + pytest.mark.xfail( + raises=TypeError, + reason="agg/apply signature mismatch - agg passes 2nd " + "argument to func", + ) + ) + result = getattr(float_frame, how)(func, *args, **kwds) + expected = getattr(float_frame, func)(*args, **kwds) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("arg", ["sum", "mean", "min", "max", "std"]) +def test_with_string_args(datetime_series, arg): + result = datetime_series.apply(arg) + expected = getattr(datetime_series, arg)() + assert result == expected + + +@pytest.mark.parametrize("op", ["mean", "median", "std", "var"]) +@pytest.mark.parametrize("how", ["agg", "apply"]) +def test_apply_np_reducer(op, how): + # GH 39116 + float_frame = DataFrame({"a": [1, 2], "b": [3, 4]}) + result = getattr(float_frame, how)(op) + # pandas ddof defaults to 1, numpy to 0 + kwargs = {"ddof": 1} if op in ("std", "var") else {} + expected = Series( + getattr(np, op)(float_frame, axis=0, **kwargs), index=float_frame.columns + ) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "op", ["abs", "ceil", "cos", "cumsum", "exp", "log", "sqrt", "square"] +) +@pytest.mark.parametrize("how", ["transform", "apply"]) +def test_apply_np_transformer(float_frame, op, how): + # GH 39116 + + # float_frame will _usually_ have negative values, which will + # trigger the warning here, but let's put one in just to be sure + float_frame.iloc[0, 0] = -1.0 + warn = None + if op in ["log", "sqrt"]: + warn = RuntimeWarning + + with tm.assert_produces_warning(warn, check_stacklevel=False): + # float_frame fixture is defined in conftest.py, so we don't check the + # stacklevel as otherwise the test would fail. + result = getattr(float_frame, how)(op) + expected = getattr(np, op)(float_frame) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "series, func, expected", + chain( + tm.get_cython_table_params( + Series(dtype=np.float64), + [ + ("sum", 0), + ("max", np.nan), + ("min", np.nan), + ("all", True), + ("any", False), + ("mean", np.nan), + ("prod", 1), + ("std", np.nan), + ("var", np.nan), + ("median", np.nan), + ], + ), + tm.get_cython_table_params( + Series([np.nan, 1, 2, 3]), + [ + ("sum", 6), + ("max", 3), + ("min", 1), + ("all", True), + ("any", True), + ("mean", 2), + ("prod", 6), + ("std", 1), + ("var", 1), + ("median", 2), + ], + ), + tm.get_cython_table_params( + Series("a b c".split()), + [ + ("sum", "abc"), + ("max", "c"), + ("min", "a"), + ("all", True), + ("any", True), + ], + ), + ), +) +def test_agg_cython_table_series(series, func, expected): + # GH21224 + # test reducing functions in + # pandas.core.base.SelectionMixin._cython_table + warn = None if isinstance(func, str) else FutureWarning + with tm.assert_produces_warning(warn, match="is currently using Series.*"): + result = series.agg(func) + if is_number(expected): + assert np.isclose(result, expected, equal_nan=True) + else: + assert result == expected + + +@pytest.mark.parametrize( + "series, func, expected", + chain( + tm.get_cython_table_params( + Series(dtype=np.float64), + [ + ("cumprod", Series([], dtype=np.float64)), + ("cumsum", Series([], dtype=np.float64)), + ], + ), + tm.get_cython_table_params( + Series([np.nan, 1, 2, 3]), + [ + ("cumprod", Series([np.nan, 1, 2, 6])), + ("cumsum", Series([np.nan, 1, 3, 6])), + ], + ), + tm.get_cython_table_params( + Series("a b c".split()), [("cumsum", Series(["a", "ab", "abc"]))] + ), + ), +) +def test_agg_cython_table_transform_series(series, func, expected): + # GH21224 + # test transforming functions in + # pandas.core.base.SelectionMixin._cython_table (cumprod, cumsum) + warn = None if isinstance(func, str) else FutureWarning + with tm.assert_produces_warning(warn, match="is currently using Series.*"): + result = series.agg(func) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "df, func, expected", + chain( + tm.get_cython_table_params( + DataFrame(), + [ + ("sum", Series(dtype="float64")), + ("max", Series(dtype="float64")), + ("min", Series(dtype="float64")), + ("all", Series(dtype=bool)), + ("any", Series(dtype=bool)), + ("mean", Series(dtype="float64")), + ("prod", Series(dtype="float64")), + ("std", Series(dtype="float64")), + ("var", Series(dtype="float64")), + ("median", Series(dtype="float64")), + ], + ), + tm.get_cython_table_params( + DataFrame([[np.nan, 1], [1, 2]]), + [ + ("sum", Series([1.0, 3])), + ("max", Series([1.0, 2])), + ("min", Series([1.0, 1])), + ("all", Series([True, True])), + ("any", Series([True, True])), + ("mean", Series([1, 1.5])), + ("prod", Series([1.0, 2])), + ("std", Series([np.nan, 0.707107])), + ("var", Series([np.nan, 0.5])), + ("median", Series([1, 1.5])), + ], + ), + ), +) +def test_agg_cython_table_frame(df, func, expected, axis): + # GH 21224 + # test reducing functions in + # pandas.core.base.SelectionMixin._cython_table + warn = None if isinstance(func, str) else FutureWarning + with tm.assert_produces_warning(warn, match="is currently using DataFrame.*"): + # GH#53425 + result = df.agg(func, axis=axis) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "df, func, expected", + chain( + tm.get_cython_table_params( + DataFrame(), [("cumprod", DataFrame()), ("cumsum", DataFrame())] + ), + tm.get_cython_table_params( + DataFrame([[np.nan, 1], [1, 2]]), + [ + ("cumprod", DataFrame([[np.nan, 1], [1, 2]])), + ("cumsum", DataFrame([[np.nan, 1], [1, 3]])), + ], + ), + ), +) +def test_agg_cython_table_transform_frame(df, func, expected, axis): + # GH 21224 + # test transforming functions in + # pandas.core.base.SelectionMixin._cython_table (cumprod, cumsum) + if axis in ("columns", 1): + # operating blockwise doesn't let us preserve dtypes + expected = expected.astype("float64") + + warn = None if isinstance(func, str) else FutureWarning + with tm.assert_produces_warning(warn, match="is currently using DataFrame.*"): + # GH#53425 + result = df.agg(func, axis=axis) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("op", series_transform_kernels) +def test_transform_groupby_kernel_series(request, string_series, op): + # GH 35964 + if op == "ngroup": + request.applymarker( + pytest.mark.xfail(raises=ValueError, reason="ngroup not valid for NDFrame") + ) + args = [0.0] if op == "fillna" else [] + ones = np.ones(string_series.shape[0]) + + warn = FutureWarning if op == "fillna" else None + msg = "SeriesGroupBy.fillna is deprecated" + with tm.assert_produces_warning(warn, match=msg): + expected = string_series.groupby(ones).transform(op, *args) + result = string_series.transform(op, 0, *args) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("op", frame_transform_kernels) +def test_transform_groupby_kernel_frame(request, axis, float_frame, op): + if op == "ngroup": + request.applymarker( + pytest.mark.xfail(raises=ValueError, reason="ngroup not valid for NDFrame") + ) + + # GH 35964 + + args = [0.0] if op == "fillna" else [] + if axis in (0, "index"): + ones = np.ones(float_frame.shape[0]) + msg = "The 'axis' keyword in DataFrame.groupby is deprecated" + else: + ones = np.ones(float_frame.shape[1]) + msg = "DataFrame.groupby with axis=1 is deprecated" + + with tm.assert_produces_warning(FutureWarning, match=msg): + gb = float_frame.groupby(ones, axis=axis) + + warn = FutureWarning if op == "fillna" else None + op_msg = "DataFrameGroupBy.fillna is deprecated" + with tm.assert_produces_warning(warn, match=op_msg): + expected = gb.transform(op, *args) + + result = float_frame.transform(op, axis, *args) + tm.assert_frame_equal(result, expected) + + # same thing, but ensuring we have multiple blocks + assert "E" not in float_frame.columns + float_frame["E"] = float_frame["A"].copy() + assert len(float_frame._mgr.arrays) > 1 + + if axis in (0, "index"): + ones = np.ones(float_frame.shape[0]) + else: + ones = np.ones(float_frame.shape[1]) + with tm.assert_produces_warning(FutureWarning, match=msg): + gb2 = float_frame.groupby(ones, axis=axis) + warn = FutureWarning if op == "fillna" else None + op_msg = "DataFrameGroupBy.fillna is deprecated" + with tm.assert_produces_warning(warn, match=op_msg): + expected2 = gb2.transform(op, *args) + result2 = float_frame.transform(op, axis, *args) + tm.assert_frame_equal(result2, expected2) + + +@pytest.mark.parametrize("method", ["abs", "shift", "pct_change", "cumsum", "rank"]) +def test_transform_method_name(method): + # GH 19760 + df = DataFrame({"A": [-1, 2]}) + result = df.transform(method) + expected = operator.methodcaller(method)(df) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/common.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/common.py new file mode 100644 index 0000000000000000000000000000000000000000..b608df1554154f4723a0147ea02c04c780839c65 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/common.py @@ -0,0 +1,155 @@ +""" +Assertion helpers for arithmetic tests. +""" +import numpy as np +import pytest + +from pandas import ( + DataFrame, + Index, + Series, + array, +) +import pandas._testing as tm +from pandas.core.arrays import ( + BooleanArray, + NumpyExtensionArray, +) + + +def assert_cannot_add(left, right, msg="cannot add"): + """ + Helper to assert that left and right cannot be added. + + Parameters + ---------- + left : object + right : object + msg : str, default "cannot add" + """ + with pytest.raises(TypeError, match=msg): + left + right + with pytest.raises(TypeError, match=msg): + right + left + + +def assert_invalid_addsub_type(left, right, msg=None): + """ + Helper to assert that left and right can be neither added nor subtracted. + + Parameters + ---------- + left : object + right : object + msg : str or None, default None + """ + with pytest.raises(TypeError, match=msg): + left + right + with pytest.raises(TypeError, match=msg): + right + left + with pytest.raises(TypeError, match=msg): + left - right + with pytest.raises(TypeError, match=msg): + right - left + + +def get_upcast_box(left, right, is_cmp: bool = False): + """ + Get the box to use for 'expected' in an arithmetic or comparison operation. + + Parameters + left : Any + right : Any + is_cmp : bool, default False + Whether the operation is a comparison method. + """ + + if isinstance(left, DataFrame) or isinstance(right, DataFrame): + return DataFrame + if isinstance(left, Series) or isinstance(right, Series): + if is_cmp and isinstance(left, Index): + # Index does not defer for comparisons + return np.array + return Series + if isinstance(left, Index) or isinstance(right, Index): + if is_cmp: + return np.array + return Index + return tm.to_array + + +def assert_invalid_comparison(left, right, box): + """ + Assert that comparison operations with mismatched types behave correctly. + + Parameters + ---------- + left : np.ndarray, ExtensionArray, Index, or Series + right : object + box : {pd.DataFrame, pd.Series, pd.Index, pd.array, tm.to_array} + """ + # Not for tznaive-tzaware comparison + + # Note: not quite the same as how we do this for tm.box_expected + xbox = box if box not in [Index, array] else np.array + + def xbox2(x): + # Eventually we'd like this to be tighter, but for now we'll + # just exclude NumpyExtensionArray[bool] + if isinstance(x, NumpyExtensionArray): + return x._ndarray + if isinstance(x, BooleanArray): + # NB: we are assuming no pd.NAs for now + return x.astype(bool) + return x + + # rev_box: box to use for reversed comparisons + rev_box = xbox + if isinstance(right, Index) and isinstance(left, Series): + rev_box = np.array + + result = xbox2(left == right) + expected = xbox(np.zeros(result.shape, dtype=np.bool_)) + + tm.assert_equal(result, expected) + + result = xbox2(right == left) + tm.assert_equal(result, rev_box(expected)) + + result = xbox2(left != right) + tm.assert_equal(result, ~expected) + + result = xbox2(right != left) + tm.assert_equal(result, rev_box(~expected)) + + msg = "|".join( + [ + "Invalid comparison between", + "Cannot compare type", + "not supported between", + "invalid type promotion", + ( + # GH#36706 npdev 1.20.0 2020-09-28 + r"The DTypes and " + r" do not have a common DType. " + "For example they cannot be stored in a single array unless the " + "dtype is `object`." + ), + ] + ) + with pytest.raises(TypeError, match=msg): + left < right + with pytest.raises(TypeError, match=msg): + left <= right + with pytest.raises(TypeError, match=msg): + left > right + with pytest.raises(TypeError, match=msg): + left >= right + with pytest.raises(TypeError, match=msg): + right < left + with pytest.raises(TypeError, match=msg): + right <= left + with pytest.raises(TypeError, match=msg): + right > left + with pytest.raises(TypeError, match=msg): + right >= left diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/conftest.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/conftest.py new file mode 100644 index 0000000000000000000000000000000000000000..c7703b34a5e38e7a3887d727b0a8c954016ad836 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/conftest.py @@ -0,0 +1,139 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import Index + + +@pytest.fixture(params=[1, np.array(1, dtype=np.int64)]) +def one(request): + """ + Several variants of integer value 1. The zero-dim integer array + behaves like an integer. + + This fixture can be used to check that datetimelike indexes handle + addition and subtraction of integers and zero-dimensional arrays + of integers. + + Examples + -------- + dti = pd.date_range('2016-01-01', periods=2, freq='h') + dti + DatetimeIndex(['2016-01-01 00:00:00', '2016-01-01 01:00:00'], + dtype='datetime64[ns]', freq='h') + dti + one + DatetimeIndex(['2016-01-01 01:00:00', '2016-01-01 02:00:00'], + dtype='datetime64[ns]', freq='h') + """ + return request.param + + +zeros = [ + box_cls([0] * 5, dtype=dtype) + for box_cls in [Index, np.array, pd.array] + for dtype in [np.int64, np.uint64, np.float64] +] +zeros.extend([box_cls([-0.0] * 5, dtype=np.float64) for box_cls in [Index, np.array]]) +zeros.extend([np.array(0, dtype=dtype) for dtype in [np.int64, np.uint64, np.float64]]) +zeros.extend([np.array(-0.0, dtype=np.float64)]) +zeros.extend([0, 0.0, -0.0]) + + +@pytest.fixture(params=zeros) +def zero(request): + """ + Several types of scalar zeros and length 5 vectors of zeros. + + This fixture can be used to check that numeric-dtype indexes handle + division by any zero numeric-dtype. + + Uses vector of length 5 for broadcasting with `numeric_idx` fixture, + which creates numeric-dtype vectors also of length 5. + + Examples + -------- + arr = RangeIndex(5) + arr / zeros + Index([nan, inf, inf, inf, inf], dtype='float64') + """ + return request.param + + +# ------------------------------------------------------------------ +# Scalar Fixtures + + +@pytest.fixture( + params=[ + pd.Timedelta("10m7s").to_pytimedelta(), + pd.Timedelta("10m7s"), + pd.Timedelta("10m7s").to_timedelta64(), + ], + ids=lambda x: type(x).__name__, +) +def scalar_td(request): + """ + Several variants of Timedelta scalars representing 10 minutes and 7 seconds. + """ + return request.param + + +@pytest.fixture( + params=[ + pd.offsets.Day(3), + pd.offsets.Hour(72), + pd.Timedelta(days=3).to_pytimedelta(), + pd.Timedelta("72:00:00"), + np.timedelta64(3, "D"), + np.timedelta64(72, "h"), + ], + ids=lambda x: type(x).__name__, +) +def three_days(request): + """ + Several timedelta-like and DateOffset objects that each represent + a 3-day timedelta + """ + return request.param + + +@pytest.fixture( + params=[ + pd.offsets.Hour(2), + pd.offsets.Minute(120), + pd.Timedelta(hours=2).to_pytimedelta(), + pd.Timedelta(seconds=2 * 3600), + np.timedelta64(2, "h"), + np.timedelta64(120, "m"), + ], + ids=lambda x: type(x).__name__, +) +def two_hours(request): + """ + Several timedelta-like and DateOffset objects that each represent + a 2-hour timedelta + """ + return request.param + + +_common_mismatch = [ + pd.offsets.YearBegin(2), + pd.offsets.MonthBegin(1), + pd.offsets.Minute(), +] + + +@pytest.fixture( + params=[ + np.timedelta64(4, "h"), + pd.Timedelta(hours=23).to_pytimedelta(), + pd.Timedelta("23:00:00"), + ] + + _common_mismatch +) +def not_daily(request): + """ + Several timedelta-like and DateOffset instances that are _not_ + compatible with Daily frequencies. + """ + return request.param diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/test_array_ops.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/test_array_ops.py new file mode 100644 index 0000000000000000000000000000000000000000..2c347d965bbf7353a6a4e81ca955341f8041b6de --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/test_array_ops.py @@ -0,0 +1,39 @@ +import operator + +import numpy as np +import pytest + +import pandas._testing as tm +from pandas.core.ops.array_ops import ( + comparison_op, + na_logical_op, +) + + +def test_na_logical_op_2d(): + left = np.arange(8).reshape(4, 2) + right = left.astype(object) + right[0, 0] = np.nan + + # Check that we fall back to the vec_binop branch + with pytest.raises(TypeError, match="unsupported operand type"): + operator.or_(left, right) + + result = na_logical_op(left, right, operator.or_) + expected = right + tm.assert_numpy_array_equal(result, expected) + + +def test_object_comparison_2d(): + left = np.arange(9).reshape(3, 3).astype(object) + right = left.T + + result = comparison_op(left, right, operator.eq) + expected = np.eye(3).astype(bool) + tm.assert_numpy_array_equal(result, expected) + + # Ensure that cython doesn't raise on non-writeable arg, which + # we can get from np.broadcast_to + right.flags.writeable = False + result = comparison_op(left, right, operator.ne) + tm.assert_numpy_array_equal(result, ~expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/test_categorical.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/test_categorical.py new file mode 100644 index 0000000000000000000000000000000000000000..d6f3a13ce670596a12ca10b9e8d02d69d63c96fb --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/test_categorical.py @@ -0,0 +1,25 @@ +import numpy as np + +from pandas import ( + Categorical, + Series, +) +import pandas._testing as tm + + +class TestCategoricalComparisons: + def test_categorical_nan_equality(self): + cat = Series(Categorical(["a", "b", "c", np.nan])) + expected = Series([True, True, True, False]) + result = cat == cat + tm.assert_series_equal(result, expected) + + def test_categorical_tuple_equality(self): + # GH 18050 + ser = Series([(0, 0), (0, 1), (0, 0), (1, 0), (1, 1)]) + expected = Series([True, False, True, False, False]) + result = ser == (0, 0) + tm.assert_series_equal(result, expected) + + result = ser.astype("category") == (0, 0) + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/test_datetime64.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/test_datetime64.py new file mode 100644 index 0000000000000000000000000000000000000000..a468449efd507fae37f3fcb15f64a3e1bf551f93 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/test_datetime64.py @@ -0,0 +1,2469 @@ +# Arithmetic tests for DataFrame/Series/Index/Array classes that should +# behave identically. +# Specifically for datetime64 and datetime64tz dtypes +from datetime import ( + datetime, + time, + timedelta, +) +from itertools import ( + product, + starmap, +) +import operator + +import numpy as np +import pytest +import pytz + +from pandas._libs.tslibs.conversion import localize_pydatetime +from pandas._libs.tslibs.offsets import shift_months +from pandas.errors import PerformanceWarning + +import pandas as pd +from pandas import ( + DateOffset, + DatetimeIndex, + NaT, + Period, + Series, + Timedelta, + TimedeltaIndex, + Timestamp, + date_range, +) +import pandas._testing as tm +from pandas.core import roperator +from pandas.tests.arithmetic.common import ( + assert_cannot_add, + assert_invalid_addsub_type, + assert_invalid_comparison, + get_upcast_box, +) + +# ------------------------------------------------------------------ +# Comparisons + + +class TestDatetime64ArrayLikeComparisons: + # Comparison tests for datetime64 vectors fully parametrized over + # DataFrame/Series/DatetimeIndex/DatetimeArray. Ideally all comparison + # tests will eventually end up here. + + def test_compare_zerodim(self, tz_naive_fixture, box_with_array): + # Test comparison with zero-dimensional array is unboxed + tz = tz_naive_fixture + box = box_with_array + dti = date_range("20130101", periods=3, tz=tz) + + other = np.array(dti.to_numpy()[0]) + + dtarr = tm.box_expected(dti, box) + xbox = get_upcast_box(dtarr, other, True) + result = dtarr <= other + expected = np.array([True, False, False]) + expected = tm.box_expected(expected, xbox) + tm.assert_equal(result, expected) + + @pytest.mark.parametrize( + "other", + [ + "foo", + -1, + 99, + 4.0, + object(), + timedelta(days=2), + # GH#19800, GH#19301 datetime.date comparison raises to + # match DatetimeIndex/Timestamp. This also matches the behavior + # of stdlib datetime.datetime + datetime(2001, 1, 1).date(), + # GH#19301 None and NaN are *not* cast to NaT for comparisons + None, + np.nan, + ], + ) + def test_dt64arr_cmp_scalar_invalid(self, other, tz_naive_fixture, box_with_array): + # GH#22074, GH#15966 + tz = tz_naive_fixture + + rng = date_range("1/1/2000", periods=10, tz=tz) + dtarr = tm.box_expected(rng, box_with_array) + assert_invalid_comparison(dtarr, other, box_with_array) + + @pytest.mark.parametrize( + "other", + [ + # GH#4968 invalid date/int comparisons + list(range(10)), + np.arange(10), + np.arange(10).astype(np.float32), + np.arange(10).astype(object), + pd.timedelta_range("1ns", periods=10).array, + np.array(pd.timedelta_range("1ns", periods=10)), + list(pd.timedelta_range("1ns", periods=10)), + pd.timedelta_range("1 Day", periods=10).astype(object), + pd.period_range("1971-01-01", freq="D", periods=10).array, + pd.period_range("1971-01-01", freq="D", periods=10).astype(object), + ], + ) + def test_dt64arr_cmp_arraylike_invalid( + self, other, tz_naive_fixture, box_with_array + ): + tz = tz_naive_fixture + + dta = date_range("1970-01-01", freq="ns", periods=10, tz=tz)._data + obj = tm.box_expected(dta, box_with_array) + assert_invalid_comparison(obj, other, box_with_array) + + def test_dt64arr_cmp_mixed_invalid(self, tz_naive_fixture): + tz = tz_naive_fixture + + dta = date_range("1970-01-01", freq="h", periods=5, tz=tz)._data + + other = np.array([0, 1, 2, dta[3], Timedelta(days=1)]) + result = dta == other + expected = np.array([False, False, False, True, False]) + tm.assert_numpy_array_equal(result, expected) + + result = dta != other + tm.assert_numpy_array_equal(result, ~expected) + + msg = "Invalid comparison between|Cannot compare type|not supported between" + with pytest.raises(TypeError, match=msg): + dta < other + with pytest.raises(TypeError, match=msg): + dta > other + with pytest.raises(TypeError, match=msg): + dta <= other + with pytest.raises(TypeError, match=msg): + dta >= other + + def test_dt64arr_nat_comparison(self, tz_naive_fixture, box_with_array): + # GH#22242, GH#22163 DataFrame considered NaT == ts incorrectly + tz = tz_naive_fixture + box = box_with_array + + ts = Timestamp("2021-01-01", tz=tz) + ser = Series([ts, NaT]) + + obj = tm.box_expected(ser, box) + xbox = get_upcast_box(obj, ts, True) + + expected = Series([True, False], dtype=np.bool_) + expected = tm.box_expected(expected, xbox) + + result = obj == ts + tm.assert_equal(result, expected) + + +class TestDatetime64SeriesComparison: + # TODO: moved from tests.series.test_operators; needs cleanup + + @pytest.mark.parametrize( + "pair", + [ + ( + [Timestamp("2011-01-01"), NaT, Timestamp("2011-01-03")], + [NaT, NaT, Timestamp("2011-01-03")], + ), + ( + [Timedelta("1 days"), NaT, Timedelta("3 days")], + [NaT, NaT, Timedelta("3 days")], + ), + ( + [Period("2011-01", freq="M"), NaT, Period("2011-03", freq="M")], + [NaT, NaT, Period("2011-03", freq="M")], + ), + ], + ) + @pytest.mark.parametrize("reverse", [True, False]) + @pytest.mark.parametrize("dtype", [None, object]) + @pytest.mark.parametrize( + "op, expected", + [ + (operator.eq, Series([False, False, True])), + (operator.ne, Series([True, True, False])), + (operator.lt, Series([False, False, False])), + (operator.gt, Series([False, False, False])), + (operator.ge, Series([False, False, True])), + (operator.le, Series([False, False, True])), + ], + ) + def test_nat_comparisons( + self, + dtype, + index_or_series, + reverse, + pair, + op, + expected, + ): + box = index_or_series + lhs, rhs = pair + if reverse: + # add lhs / rhs switched data + lhs, rhs = rhs, lhs + + left = Series(lhs, dtype=dtype) + right = box(rhs, dtype=dtype) + + result = op(left, right) + + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize( + "data", + [ + [Timestamp("2011-01-01"), NaT, Timestamp("2011-01-03")], + [Timedelta("1 days"), NaT, Timedelta("3 days")], + [Period("2011-01", freq="M"), NaT, Period("2011-03", freq="M")], + ], + ) + @pytest.mark.parametrize("dtype", [None, object]) + def test_nat_comparisons_scalar(self, dtype, data, box_with_array): + box = box_with_array + + left = Series(data, dtype=dtype) + left = tm.box_expected(left, box) + xbox = get_upcast_box(left, NaT, True) + + expected = [False, False, False] + expected = tm.box_expected(expected, xbox) + if box is pd.array and dtype is object: + expected = pd.array(expected, dtype="bool") + + tm.assert_equal(left == NaT, expected) + tm.assert_equal(NaT == left, expected) + + expected = [True, True, True] + expected = tm.box_expected(expected, xbox) + if box is pd.array and dtype is object: + expected = pd.array(expected, dtype="bool") + tm.assert_equal(left != NaT, expected) + tm.assert_equal(NaT != left, expected) + + expected = [False, False, False] + expected = tm.box_expected(expected, xbox) + if box is pd.array and dtype is object: + expected = pd.array(expected, dtype="bool") + tm.assert_equal(left < NaT, expected) + tm.assert_equal(NaT > left, expected) + tm.assert_equal(left <= NaT, expected) + tm.assert_equal(NaT >= left, expected) + + tm.assert_equal(left > NaT, expected) + tm.assert_equal(NaT < left, expected) + tm.assert_equal(left >= NaT, expected) + tm.assert_equal(NaT <= left, expected) + + @pytest.mark.parametrize("val", [datetime(2000, 1, 4), datetime(2000, 1, 5)]) + def test_series_comparison_scalars(self, val): + series = Series(date_range("1/1/2000", periods=10)) + + result = series > val + expected = Series([x > val for x in series]) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize( + "left,right", [("lt", "gt"), ("le", "ge"), ("eq", "eq"), ("ne", "ne")] + ) + def test_timestamp_compare_series(self, left, right): + # see gh-4982 + # Make sure we can compare Timestamps on the right AND left hand side. + ser = Series(date_range("20010101", periods=10), name="dates") + s_nat = ser.copy(deep=True) + + ser[0] = Timestamp("nat") + ser[3] = Timestamp("nat") + + left_f = getattr(operator, left) + right_f = getattr(operator, right) + + # No NaT + expected = left_f(ser, Timestamp("20010109")) + result = right_f(Timestamp("20010109"), ser) + tm.assert_series_equal(result, expected) + + # NaT + expected = left_f(ser, Timestamp("nat")) + result = right_f(Timestamp("nat"), ser) + tm.assert_series_equal(result, expected) + + # Compare to Timestamp with series containing NaT + expected = left_f(s_nat, Timestamp("20010109")) + result = right_f(Timestamp("20010109"), s_nat) + tm.assert_series_equal(result, expected) + + # Compare to NaT with series containing NaT + expected = left_f(s_nat, NaT) + result = right_f(NaT, s_nat) + tm.assert_series_equal(result, expected) + + def test_dt64arr_timestamp_equality(self, box_with_array): + # GH#11034 + box = box_with_array + + ser = Series([Timestamp("2000-01-29 01:59:00"), Timestamp("2000-01-30"), NaT]) + ser = tm.box_expected(ser, box) + xbox = get_upcast_box(ser, ser, True) + + result = ser != ser + expected = tm.box_expected([False, False, True], xbox) + tm.assert_equal(result, expected) + + if box is pd.DataFrame: + # alignment for frame vs series comparisons deprecated + # in GH#46795 enforced 2.0 + with pytest.raises(ValueError, match="not aligned"): + ser != ser[0] + + else: + result = ser != ser[0] + expected = tm.box_expected([False, True, True], xbox) + tm.assert_equal(result, expected) + + if box is pd.DataFrame: + # alignment for frame vs series comparisons deprecated + # in GH#46795 enforced 2.0 + with pytest.raises(ValueError, match="not aligned"): + ser != ser[2] + else: + result = ser != ser[2] + expected = tm.box_expected([True, True, True], xbox) + tm.assert_equal(result, expected) + + result = ser == ser + expected = tm.box_expected([True, True, False], xbox) + tm.assert_equal(result, expected) + + if box is pd.DataFrame: + # alignment for frame vs series comparisons deprecated + # in GH#46795 enforced 2.0 + with pytest.raises(ValueError, match="not aligned"): + ser == ser[0] + else: + result = ser == ser[0] + expected = tm.box_expected([True, False, False], xbox) + tm.assert_equal(result, expected) + + if box is pd.DataFrame: + # alignment for frame vs series comparisons deprecated + # in GH#46795 enforced 2.0 + with pytest.raises(ValueError, match="not aligned"): + ser == ser[2] + else: + result = ser == ser[2] + expected = tm.box_expected([False, False, False], xbox) + tm.assert_equal(result, expected) + + @pytest.mark.parametrize( + "datetimelike", + [ + Timestamp("20130101"), + datetime(2013, 1, 1), + np.datetime64("2013-01-01T00:00", "ns"), + ], + ) + @pytest.mark.parametrize( + "op,expected", + [ + (operator.lt, [True, False, False, False]), + (operator.le, [True, True, False, False]), + (operator.eq, [False, True, False, False]), + (operator.gt, [False, False, False, True]), + ], + ) + def test_dt64_compare_datetime_scalar(self, datetimelike, op, expected): + # GH#17965, test for ability to compare datetime64[ns] columns + # to datetimelike + ser = Series( + [ + Timestamp("20120101"), + Timestamp("20130101"), + np.nan, + Timestamp("20130103"), + ], + name="A", + ) + result = op(ser, datetimelike) + expected = Series(expected, name="A") + tm.assert_series_equal(result, expected) + + +class TestDatetimeIndexComparisons: + # TODO: moved from tests.indexes.test_base; parametrize and de-duplicate + def test_comparators(self, comparison_op): + index = date_range("2020-01-01", periods=10) + element = index[len(index) // 2] + element = Timestamp(element).to_datetime64() + + arr = np.array(index) + arr_result = comparison_op(arr, element) + index_result = comparison_op(index, element) + + assert isinstance(index_result, np.ndarray) + tm.assert_numpy_array_equal(arr_result, index_result) + + @pytest.mark.parametrize( + "other", + [datetime(2016, 1, 1), Timestamp("2016-01-01"), np.datetime64("2016-01-01")], + ) + def test_dti_cmp_datetimelike(self, other, tz_naive_fixture): + tz = tz_naive_fixture + dti = date_range("2016-01-01", periods=2, tz=tz) + if tz is not None: + if isinstance(other, np.datetime64): + pytest.skip(f"{type(other).__name__} is not tz aware") + other = localize_pydatetime(other, dti.tzinfo) + + result = dti == other + expected = np.array([True, False]) + tm.assert_numpy_array_equal(result, expected) + + result = dti > other + expected = np.array([False, True]) + tm.assert_numpy_array_equal(result, expected) + + result = dti >= other + expected = np.array([True, True]) + tm.assert_numpy_array_equal(result, expected) + + result = dti < other + expected = np.array([False, False]) + tm.assert_numpy_array_equal(result, expected) + + result = dti <= other + expected = np.array([True, False]) + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize("dtype", [None, object]) + def test_dti_cmp_nat(self, dtype, box_with_array): + left = DatetimeIndex([Timestamp("2011-01-01"), NaT, Timestamp("2011-01-03")]) + right = DatetimeIndex([NaT, NaT, Timestamp("2011-01-03")]) + + left = tm.box_expected(left, box_with_array) + right = tm.box_expected(right, box_with_array) + xbox = get_upcast_box(left, right, True) + + lhs, rhs = left, right + if dtype is object: + lhs, rhs = left.astype(object), right.astype(object) + + result = rhs == lhs + expected = np.array([False, False, True]) + expected = tm.box_expected(expected, xbox) + tm.assert_equal(result, expected) + + result = lhs != rhs + expected = np.array([True, True, False]) + expected = tm.box_expected(expected, xbox) + tm.assert_equal(result, expected) + + expected = np.array([False, False, False]) + expected = tm.box_expected(expected, xbox) + tm.assert_equal(lhs == NaT, expected) + tm.assert_equal(NaT == rhs, expected) + + expected = np.array([True, True, True]) + expected = tm.box_expected(expected, xbox) + tm.assert_equal(lhs != NaT, expected) + tm.assert_equal(NaT != lhs, expected) + + expected = np.array([False, False, False]) + expected = tm.box_expected(expected, xbox) + tm.assert_equal(lhs < NaT, expected) + tm.assert_equal(NaT > lhs, expected) + + def test_dti_cmp_nat_behaves_like_float_cmp_nan(self): + fidx1 = pd.Index([1.0, np.nan, 3.0, np.nan, 5.0, 7.0]) + fidx2 = pd.Index([2.0, 3.0, np.nan, np.nan, 6.0, 7.0]) + + didx1 = DatetimeIndex( + ["2014-01-01", NaT, "2014-03-01", NaT, "2014-05-01", "2014-07-01"] + ) + didx2 = DatetimeIndex( + ["2014-02-01", "2014-03-01", NaT, NaT, "2014-06-01", "2014-07-01"] + ) + darr = np.array( + [ + np.datetime64("2014-02-01 00:00"), + np.datetime64("2014-03-01 00:00"), + np.datetime64("nat"), + np.datetime64("nat"), + np.datetime64("2014-06-01 00:00"), + np.datetime64("2014-07-01 00:00"), + ] + ) + + cases = [(fidx1, fidx2), (didx1, didx2), (didx1, darr)] + + # Check pd.NaT is handles as the same as np.nan + with tm.assert_produces_warning(None): + for idx1, idx2 in cases: + result = idx1 < idx2 + expected = np.array([True, False, False, False, True, False]) + tm.assert_numpy_array_equal(result, expected) + + result = idx2 > idx1 + expected = np.array([True, False, False, False, True, False]) + tm.assert_numpy_array_equal(result, expected) + + result = idx1 <= idx2 + expected = np.array([True, False, False, False, True, True]) + tm.assert_numpy_array_equal(result, expected) + + result = idx2 >= idx1 + expected = np.array([True, False, False, False, True, True]) + tm.assert_numpy_array_equal(result, expected) + + result = idx1 == idx2 + expected = np.array([False, False, False, False, False, True]) + tm.assert_numpy_array_equal(result, expected) + + result = idx1 != idx2 + expected = np.array([True, True, True, True, True, False]) + tm.assert_numpy_array_equal(result, expected) + + with tm.assert_produces_warning(None): + for idx1, val in [(fidx1, np.nan), (didx1, NaT)]: + result = idx1 < val + expected = np.array([False, False, False, False, False, False]) + tm.assert_numpy_array_equal(result, expected) + result = idx1 > val + tm.assert_numpy_array_equal(result, expected) + + result = idx1 <= val + tm.assert_numpy_array_equal(result, expected) + result = idx1 >= val + tm.assert_numpy_array_equal(result, expected) + + result = idx1 == val + tm.assert_numpy_array_equal(result, expected) + + result = idx1 != val + expected = np.array([True, True, True, True, True, True]) + tm.assert_numpy_array_equal(result, expected) + + # Check pd.NaT is handles as the same as np.nan + with tm.assert_produces_warning(None): + for idx1, val in [(fidx1, 3), (didx1, datetime(2014, 3, 1))]: + result = idx1 < val + expected = np.array([True, False, False, False, False, False]) + tm.assert_numpy_array_equal(result, expected) + result = idx1 > val + expected = np.array([False, False, False, False, True, True]) + tm.assert_numpy_array_equal(result, expected) + + result = idx1 <= val + expected = np.array([True, False, True, False, False, False]) + tm.assert_numpy_array_equal(result, expected) + result = idx1 >= val + expected = np.array([False, False, True, False, True, True]) + tm.assert_numpy_array_equal(result, expected) + + result = idx1 == val + expected = np.array([False, False, True, False, False, False]) + tm.assert_numpy_array_equal(result, expected) + + result = idx1 != val + expected = np.array([True, True, False, True, True, True]) + tm.assert_numpy_array_equal(result, expected) + + def test_comparison_tzawareness_compat(self, comparison_op, box_with_array): + # GH#18162 + op = comparison_op + box = box_with_array + + dr = date_range("2016-01-01", periods=6) + dz = dr.tz_localize("US/Pacific") + + dr = tm.box_expected(dr, box) + dz = tm.box_expected(dz, box) + + if box is pd.DataFrame: + tolist = lambda x: x.astype(object).values.tolist()[0] + else: + tolist = list + + if op not in [operator.eq, operator.ne]: + msg = ( + r"Invalid comparison between dtype=datetime64\[ns.*\] " + "and (Timestamp|DatetimeArray|list|ndarray)" + ) + with pytest.raises(TypeError, match=msg): + op(dr, dz) + + with pytest.raises(TypeError, match=msg): + op(dr, tolist(dz)) + with pytest.raises(TypeError, match=msg): + op(dr, np.array(tolist(dz), dtype=object)) + with pytest.raises(TypeError, match=msg): + op(dz, dr) + + with pytest.raises(TypeError, match=msg): + op(dz, tolist(dr)) + with pytest.raises(TypeError, match=msg): + op(dz, np.array(tolist(dr), dtype=object)) + + # The aware==aware and naive==naive comparisons should *not* raise + assert np.all(dr == dr) + assert np.all(dr == tolist(dr)) + assert np.all(tolist(dr) == dr) + assert np.all(np.array(tolist(dr), dtype=object) == dr) + assert np.all(dr == np.array(tolist(dr), dtype=object)) + + assert np.all(dz == dz) + assert np.all(dz == tolist(dz)) + assert np.all(tolist(dz) == dz) + assert np.all(np.array(tolist(dz), dtype=object) == dz) + assert np.all(dz == np.array(tolist(dz), dtype=object)) + + def test_comparison_tzawareness_compat_scalars(self, comparison_op, box_with_array): + # GH#18162 + op = comparison_op + + dr = date_range("2016-01-01", periods=6) + dz = dr.tz_localize("US/Pacific") + + dr = tm.box_expected(dr, box_with_array) + dz = tm.box_expected(dz, box_with_array) + + # Check comparisons against scalar Timestamps + ts = Timestamp("2000-03-14 01:59") + ts_tz = Timestamp("2000-03-14 01:59", tz="Europe/Amsterdam") + + assert np.all(dr > ts) + msg = r"Invalid comparison between dtype=datetime64\[ns.*\] and Timestamp" + if op not in [operator.eq, operator.ne]: + with pytest.raises(TypeError, match=msg): + op(dr, ts_tz) + + assert np.all(dz > ts_tz) + if op not in [operator.eq, operator.ne]: + with pytest.raises(TypeError, match=msg): + op(dz, ts) + + if op not in [operator.eq, operator.ne]: + # GH#12601: Check comparison against Timestamps and DatetimeIndex + with pytest.raises(TypeError, match=msg): + op(ts, dz) + + @pytest.mark.parametrize( + "other", + [datetime(2016, 1, 1), Timestamp("2016-01-01"), np.datetime64("2016-01-01")], + ) + # Bug in NumPy? https://github.com/numpy/numpy/issues/13841 + # Raising in __eq__ will fallback to NumPy, which warns, fails, + # then re-raises the original exception. So we just need to ignore. + @pytest.mark.filterwarnings("ignore:elementwise comp:DeprecationWarning") + def test_scalar_comparison_tzawareness( + self, comparison_op, other, tz_aware_fixture, box_with_array + ): + op = comparison_op + tz = tz_aware_fixture + dti = date_range("2016-01-01", periods=2, tz=tz) + + dtarr = tm.box_expected(dti, box_with_array) + xbox = get_upcast_box(dtarr, other, True) + if op in [operator.eq, operator.ne]: + exbool = op is operator.ne + expected = np.array([exbool, exbool], dtype=bool) + expected = tm.box_expected(expected, xbox) + + result = op(dtarr, other) + tm.assert_equal(result, expected) + + result = op(other, dtarr) + tm.assert_equal(result, expected) + else: + msg = ( + r"Invalid comparison between dtype=datetime64\[ns, .*\] " + f"and {type(other).__name__}" + ) + with pytest.raises(TypeError, match=msg): + op(dtarr, other) + with pytest.raises(TypeError, match=msg): + op(other, dtarr) + + def test_nat_comparison_tzawareness(self, comparison_op): + # GH#19276 + # tzaware DatetimeIndex should not raise when compared to NaT + op = comparison_op + + dti = DatetimeIndex( + ["2014-01-01", NaT, "2014-03-01", NaT, "2014-05-01", "2014-07-01"] + ) + expected = np.array([op == operator.ne] * len(dti)) + result = op(dti, NaT) + tm.assert_numpy_array_equal(result, expected) + + result = op(dti.tz_localize("US/Pacific"), NaT) + tm.assert_numpy_array_equal(result, expected) + + def test_dti_cmp_str(self, tz_naive_fixture): + # GH#22074 + # regardless of tz, we expect these comparisons are valid + tz = tz_naive_fixture + rng = date_range("1/1/2000", periods=10, tz=tz) + other = "1/1/2000" + + result = rng == other + expected = np.array([True] + [False] * 9) + tm.assert_numpy_array_equal(result, expected) + + result = rng != other + expected = np.array([False] + [True] * 9) + tm.assert_numpy_array_equal(result, expected) + + result = rng < other + expected = np.array([False] * 10) + tm.assert_numpy_array_equal(result, expected) + + result = rng <= other + expected = np.array([True] + [False] * 9) + tm.assert_numpy_array_equal(result, expected) + + result = rng > other + expected = np.array([False] + [True] * 9) + tm.assert_numpy_array_equal(result, expected) + + result = rng >= other + expected = np.array([True] * 10) + tm.assert_numpy_array_equal(result, expected) + + def test_dti_cmp_list(self): + rng = date_range("1/1/2000", periods=10) + + result = rng == list(rng) + expected = rng == rng + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize( + "other", + [ + pd.timedelta_range("1D", periods=10), + pd.timedelta_range("1D", periods=10).to_series(), + pd.timedelta_range("1D", periods=10).asi8.view("m8[ns]"), + ], + ids=lambda x: type(x).__name__, + ) + def test_dti_cmp_tdi_tzawareness(self, other): + # GH#22074 + # reversion test that we _don't_ call _assert_tzawareness_compat + # when comparing against TimedeltaIndex + dti = date_range("2000-01-01", periods=10, tz="Asia/Tokyo") + + result = dti == other + expected = np.array([False] * 10) + tm.assert_numpy_array_equal(result, expected) + + result = dti != other + expected = np.array([True] * 10) + tm.assert_numpy_array_equal(result, expected) + msg = "Invalid comparison between" + with pytest.raises(TypeError, match=msg): + dti < other + with pytest.raises(TypeError, match=msg): + dti <= other + with pytest.raises(TypeError, match=msg): + dti > other + with pytest.raises(TypeError, match=msg): + dti >= other + + def test_dti_cmp_object_dtype(self): + # GH#22074 + dti = date_range("2000-01-01", periods=10, tz="Asia/Tokyo") + + other = dti.astype("O") + + result = dti == other + expected = np.array([True] * 10) + tm.assert_numpy_array_equal(result, expected) + + other = dti.tz_localize(None) + result = dti != other + tm.assert_numpy_array_equal(result, expected) + + other = np.array(list(dti[:5]) + [Timedelta(days=1)] * 5) + result = dti == other + expected = np.array([True] * 5 + [False] * 5) + tm.assert_numpy_array_equal(result, expected) + msg = ">=' not supported between instances of 'Timestamp' and 'Timedelta'" + with pytest.raises(TypeError, match=msg): + dti >= other + + +# ------------------------------------------------------------------ +# Arithmetic + + +class TestDatetime64Arithmetic: + # This class is intended for "finished" tests that are fully parametrized + # over DataFrame/Series/Index/DatetimeArray + + # ------------------------------------------------------------- + # Addition/Subtraction of timedelta-like + + @pytest.mark.arm_slow + def test_dt64arr_add_timedeltalike_scalar( + self, tz_naive_fixture, two_hours, box_with_array + ): + # GH#22005, GH#22163 check DataFrame doesn't raise TypeError + tz = tz_naive_fixture + + rng = date_range("2000-01-01", "2000-02-01", tz=tz) + expected = date_range("2000-01-01 02:00", "2000-02-01 02:00", tz=tz) + + rng = tm.box_expected(rng, box_with_array) + expected = tm.box_expected(expected, box_with_array) + + result = rng + two_hours + tm.assert_equal(result, expected) + + result = two_hours + rng + tm.assert_equal(result, expected) + + rng += two_hours + tm.assert_equal(rng, expected) + + def test_dt64arr_sub_timedeltalike_scalar( + self, tz_naive_fixture, two_hours, box_with_array + ): + tz = tz_naive_fixture + + rng = date_range("2000-01-01", "2000-02-01", tz=tz) + expected = date_range("1999-12-31 22:00", "2000-01-31 22:00", tz=tz) + + rng = tm.box_expected(rng, box_with_array) + expected = tm.box_expected(expected, box_with_array) + + result = rng - two_hours + tm.assert_equal(result, expected) + + rng -= two_hours + tm.assert_equal(rng, expected) + + def test_dt64_array_sub_dt_with_different_timezone(self, box_with_array): + t1 = date_range("20130101", periods=3).tz_localize("US/Eastern") + t1 = tm.box_expected(t1, box_with_array) + t2 = Timestamp("20130101").tz_localize("CET") + tnaive = Timestamp(20130101) + + result = t1 - t2 + expected = TimedeltaIndex( + ["0 days 06:00:00", "1 days 06:00:00", "2 days 06:00:00"] + ) + expected = tm.box_expected(expected, box_with_array) + tm.assert_equal(result, expected) + + result = t2 - t1 + expected = TimedeltaIndex( + ["-1 days +18:00:00", "-2 days +18:00:00", "-3 days +18:00:00"] + ) + expected = tm.box_expected(expected, box_with_array) + tm.assert_equal(result, expected) + + msg = "Cannot subtract tz-naive and tz-aware datetime-like objects" + with pytest.raises(TypeError, match=msg): + t1 - tnaive + + with pytest.raises(TypeError, match=msg): + tnaive - t1 + + def test_dt64_array_sub_dt64_array_with_different_timezone(self, box_with_array): + t1 = date_range("20130101", periods=3).tz_localize("US/Eastern") + t1 = tm.box_expected(t1, box_with_array) + t2 = date_range("20130101", periods=3).tz_localize("CET") + t2 = tm.box_expected(t2, box_with_array) + tnaive = date_range("20130101", periods=3) + + result = t1 - t2 + expected = TimedeltaIndex( + ["0 days 06:00:00", "0 days 06:00:00", "0 days 06:00:00"] + ) + expected = tm.box_expected(expected, box_with_array) + tm.assert_equal(result, expected) + + result = t2 - t1 + expected = TimedeltaIndex( + ["-1 days +18:00:00", "-1 days +18:00:00", "-1 days +18:00:00"] + ) + expected = tm.box_expected(expected, box_with_array) + tm.assert_equal(result, expected) + + msg = "Cannot subtract tz-naive and tz-aware datetime-like objects" + with pytest.raises(TypeError, match=msg): + t1 - tnaive + + with pytest.raises(TypeError, match=msg): + tnaive - t1 + + def test_dt64arr_add_sub_td64_nat(self, box_with_array, tz_naive_fixture): + # GH#23320 special handling for timedelta64("NaT") + tz = tz_naive_fixture + + dti = date_range("1994-04-01", periods=9, tz=tz, freq="QS") + other = np.timedelta64("NaT") + expected = DatetimeIndex(["NaT"] * 9, tz=tz).as_unit("ns") + + obj = tm.box_expected(dti, box_with_array) + expected = tm.box_expected(expected, box_with_array) + + result = obj + other + tm.assert_equal(result, expected) + result = other + obj + tm.assert_equal(result, expected) + result = obj - other + tm.assert_equal(result, expected) + msg = "cannot subtract" + with pytest.raises(TypeError, match=msg): + other - obj + + def test_dt64arr_add_sub_td64ndarray(self, tz_naive_fixture, box_with_array): + tz = tz_naive_fixture + dti = date_range("2016-01-01", periods=3, tz=tz) + tdi = TimedeltaIndex(["-1 Day", "-1 Day", "-1 Day"]) + tdarr = tdi.values + + expected = date_range("2015-12-31", "2016-01-02", periods=3, tz=tz) + + dtarr = tm.box_expected(dti, box_with_array) + expected = tm.box_expected(expected, box_with_array) + + result = dtarr + tdarr + tm.assert_equal(result, expected) + result = tdarr + dtarr + tm.assert_equal(result, expected) + + expected = date_range("2016-01-02", "2016-01-04", periods=3, tz=tz) + expected = tm.box_expected(expected, box_with_array) + + result = dtarr - tdarr + tm.assert_equal(result, expected) + msg = "cannot subtract|(bad|unsupported) operand type for unary" + with pytest.raises(TypeError, match=msg): + tdarr - dtarr + + # ----------------------------------------------------------------- + # Subtraction of datetime-like scalars + + @pytest.mark.parametrize( + "ts", + [ + Timestamp("2013-01-01"), + Timestamp("2013-01-01").to_pydatetime(), + Timestamp("2013-01-01").to_datetime64(), + # GH#7996, GH#22163 ensure non-nano datetime64 is converted to nano + # for DataFrame operation + np.datetime64("2013-01-01", "D"), + ], + ) + def test_dt64arr_sub_dtscalar(self, box_with_array, ts): + # GH#8554, GH#22163 DataFrame op should _not_ return dt64 dtype + idx = date_range("2013-01-01", periods=3)._with_freq(None) + idx = tm.box_expected(idx, box_with_array) + + expected = TimedeltaIndex(["0 Days", "1 Day", "2 Days"]) + expected = tm.box_expected(expected, box_with_array) + + result = idx - ts + tm.assert_equal(result, expected) + + result = ts - idx + tm.assert_equal(result, -expected) + tm.assert_equal(result, -expected) + + def test_dt64arr_sub_timestamp_tzaware(self, box_with_array): + ser = date_range("2014-03-17", periods=2, freq="D", tz="US/Eastern") + ser = ser._with_freq(None) + ts = ser[0] + + ser = tm.box_expected(ser, box_with_array) + + delta_series = Series([np.timedelta64(0, "D"), np.timedelta64(1, "D")]) + expected = tm.box_expected(delta_series, box_with_array) + + tm.assert_equal(ser - ts, expected) + tm.assert_equal(ts - ser, -expected) + + def test_dt64arr_sub_NaT(self, box_with_array, unit): + # GH#18808 + dti = DatetimeIndex([NaT, Timestamp("19900315")]).as_unit(unit) + ser = tm.box_expected(dti, box_with_array) + + result = ser - NaT + expected = Series([NaT, NaT], dtype=f"timedelta64[{unit}]") + expected = tm.box_expected(expected, box_with_array) + tm.assert_equal(result, expected) + + dti_tz = dti.tz_localize("Asia/Tokyo") + ser_tz = tm.box_expected(dti_tz, box_with_array) + + result = ser_tz - NaT + expected = Series([NaT, NaT], dtype=f"timedelta64[{unit}]") + expected = tm.box_expected(expected, box_with_array) + tm.assert_equal(result, expected) + + # ------------------------------------------------------------- + # Subtraction of datetime-like array-like + + def test_dt64arr_sub_dt64object_array(self, box_with_array, tz_naive_fixture): + dti = date_range("2016-01-01", periods=3, tz=tz_naive_fixture) + expected = dti - dti + + obj = tm.box_expected(dti, box_with_array) + expected = tm.box_expected(expected, box_with_array).astype(object) + + with tm.assert_produces_warning(PerformanceWarning): + result = obj - obj.astype(object) + tm.assert_equal(result, expected) + + def test_dt64arr_naive_sub_dt64ndarray(self, box_with_array): + dti = date_range("2016-01-01", periods=3, tz=None) + dt64vals = dti.values + + dtarr = tm.box_expected(dti, box_with_array) + + expected = dtarr - dtarr + result = dtarr - dt64vals + tm.assert_equal(result, expected) + result = dt64vals - dtarr + tm.assert_equal(result, expected) + + def test_dt64arr_aware_sub_dt64ndarray_raises( + self, tz_aware_fixture, box_with_array + ): + tz = tz_aware_fixture + dti = date_range("2016-01-01", periods=3, tz=tz) + dt64vals = dti.values + + dtarr = tm.box_expected(dti, box_with_array) + msg = "Cannot subtract tz-naive and tz-aware datetime" + with pytest.raises(TypeError, match=msg): + dtarr - dt64vals + with pytest.raises(TypeError, match=msg): + dt64vals - dtarr + + # ------------------------------------------------------------- + # Addition of datetime-like others (invalid) + + def test_dt64arr_add_dtlike_raises(self, tz_naive_fixture, box_with_array): + # GH#22163 ensure DataFrame doesn't cast Timestamp to i8 + # GH#9631 + tz = tz_naive_fixture + + dti = date_range("2016-01-01", periods=3, tz=tz) + if tz is None: + dti2 = dti.tz_localize("US/Eastern") + else: + dti2 = dti.tz_localize(None) + dtarr = tm.box_expected(dti, box_with_array) + + assert_cannot_add(dtarr, dti.values) + assert_cannot_add(dtarr, dti) + assert_cannot_add(dtarr, dtarr) + assert_cannot_add(dtarr, dti[0]) + assert_cannot_add(dtarr, dti[0].to_pydatetime()) + assert_cannot_add(dtarr, dti[0].to_datetime64()) + assert_cannot_add(dtarr, dti2[0]) + assert_cannot_add(dtarr, dti2[0].to_pydatetime()) + assert_cannot_add(dtarr, np.datetime64("2011-01-01", "D")) + + # ------------------------------------------------------------- + # Other Invalid Addition/Subtraction + + # Note: freq here includes both Tick and non-Tick offsets; this is + # relevant because historically integer-addition was allowed if we had + # a freq. + @pytest.mark.parametrize("freq", ["h", "D", "W", "2ME", "MS", "QE", "B", None]) + @pytest.mark.parametrize("dtype", [None, "uint8"]) + def test_dt64arr_addsub_intlike( + self, request, dtype, index_or_series_or_array, freq, tz_naive_fixture + ): + # GH#19959, GH#19123, GH#19012 + # GH#55860 use index_or_series_or_array instead of box_with_array + # bc DataFrame alignment makes it inapplicable + tz = tz_naive_fixture + + if freq is None: + dti = DatetimeIndex(["NaT", "2017-04-05 06:07:08"], tz=tz) + else: + dti = date_range("2016-01-01", periods=2, freq=freq, tz=tz) + + obj = index_or_series_or_array(dti) + other = np.array([4, -1]) + if dtype is not None: + other = other.astype(dtype) + + msg = "|".join( + [ + "Addition/subtraction of integers", + "cannot subtract DatetimeArray from", + # IntegerArray + "can only perform ops with numeric values", + "unsupported operand type.*Categorical", + r"unsupported operand type\(s\) for -: 'int' and 'Timestamp'", + ] + ) + assert_invalid_addsub_type(obj, 1, msg) + assert_invalid_addsub_type(obj, np.int64(2), msg) + assert_invalid_addsub_type(obj, np.array(3, dtype=np.int64), msg) + assert_invalid_addsub_type(obj, other, msg) + assert_invalid_addsub_type(obj, np.array(other), msg) + assert_invalid_addsub_type(obj, pd.array(other), msg) + assert_invalid_addsub_type(obj, pd.Categorical(other), msg) + assert_invalid_addsub_type(obj, pd.Index(other), msg) + assert_invalid_addsub_type(obj, Series(other), msg) + + @pytest.mark.parametrize( + "other", + [ + 3.14, + np.array([2.0, 3.0]), + # GH#13078 datetime +/- Period is invalid + Period("2011-01-01", freq="D"), + # https://github.com/pandas-dev/pandas/issues/10329 + time(1, 2, 3), + ], + ) + @pytest.mark.parametrize("dti_freq", [None, "D"]) + def test_dt64arr_add_sub_invalid(self, dti_freq, other, box_with_array): + dti = DatetimeIndex(["2011-01-01", "2011-01-02"], freq=dti_freq) + dtarr = tm.box_expected(dti, box_with_array) + msg = "|".join( + [ + "unsupported operand type", + "cannot (add|subtract)", + "cannot use operands with types", + "ufunc '?(add|subtract)'? cannot use operands with types", + "Concatenation operation is not implemented for NumPy arrays", + ] + ) + assert_invalid_addsub_type(dtarr, other, msg) + + @pytest.mark.parametrize("pi_freq", ["D", "W", "Q", "h"]) + @pytest.mark.parametrize("dti_freq", [None, "D"]) + def test_dt64arr_add_sub_parr( + self, dti_freq, pi_freq, box_with_array, box_with_array2 + ): + # GH#20049 subtracting PeriodIndex should raise TypeError + dti = DatetimeIndex(["2011-01-01", "2011-01-02"], freq=dti_freq) + pi = dti.to_period(pi_freq) + + dtarr = tm.box_expected(dti, box_with_array) + parr = tm.box_expected(pi, box_with_array2) + msg = "|".join( + [ + "cannot (add|subtract)", + "unsupported operand", + "descriptor.*requires", + "ufunc.*cannot use operands", + ] + ) + assert_invalid_addsub_type(dtarr, parr, msg) + + @pytest.mark.filterwarnings("ignore::pandas.errors.PerformanceWarning") + def test_dt64arr_addsub_time_objects_raises(self, box_with_array, tz_naive_fixture): + # https://github.com/pandas-dev/pandas/issues/10329 + + tz = tz_naive_fixture + + obj1 = date_range("2012-01-01", periods=3, tz=tz) + obj2 = [time(i, i, i) for i in range(3)] + + obj1 = tm.box_expected(obj1, box_with_array) + obj2 = tm.box_expected(obj2, box_with_array) + + msg = "|".join( + [ + "unsupported operand", + "cannot subtract DatetimeArray from ndarray", + ] + ) + # pandas.errors.PerformanceWarning: Non-vectorized DateOffset being + # applied to Series or DatetimeIndex + # we aren't testing that here, so ignore. + assert_invalid_addsub_type(obj1, obj2, msg=msg) + + # ------------------------------------------------------------- + # Other invalid operations + + @pytest.mark.parametrize( + "dt64_series", + [ + Series([Timestamp("19900315"), Timestamp("19900315")]), + Series([NaT, Timestamp("19900315")]), + Series([NaT, NaT], dtype="datetime64[ns]"), + ], + ) + @pytest.mark.parametrize("one", [1, 1.0, np.array(1)]) + def test_dt64_mul_div_numeric_invalid(self, one, dt64_series, box_with_array): + obj = tm.box_expected(dt64_series, box_with_array) + + msg = "cannot perform .* with this index type" + + # multiplication + with pytest.raises(TypeError, match=msg): + obj * one + with pytest.raises(TypeError, match=msg): + one * obj + + # division + with pytest.raises(TypeError, match=msg): + obj / one + with pytest.raises(TypeError, match=msg): + one / obj + + +class TestDatetime64DateOffsetArithmetic: + # ------------------------------------------------------------- + # Tick DateOffsets + + # TODO: parametrize over timezone? + @pytest.mark.parametrize("unit", ["s", "ms", "us", "ns"]) + def test_dt64arr_series_add_tick_DateOffset(self, box_with_array, unit): + # GH#4532 + # operate with pd.offsets + ser = Series( + [Timestamp("20130101 9:01"), Timestamp("20130101 9:02")] + ).dt.as_unit(unit) + expected = Series( + [Timestamp("20130101 9:01:05"), Timestamp("20130101 9:02:05")] + ).dt.as_unit(unit) + + ser = tm.box_expected(ser, box_with_array) + expected = tm.box_expected(expected, box_with_array) + + result = ser + pd.offsets.Second(5) + tm.assert_equal(result, expected) + + result2 = pd.offsets.Second(5) + ser + tm.assert_equal(result2, expected) + + def test_dt64arr_series_sub_tick_DateOffset(self, box_with_array): + # GH#4532 + # operate with pd.offsets + ser = Series([Timestamp("20130101 9:01"), Timestamp("20130101 9:02")]) + expected = Series( + [Timestamp("20130101 9:00:55"), Timestamp("20130101 9:01:55")] + ) + + ser = tm.box_expected(ser, box_with_array) + expected = tm.box_expected(expected, box_with_array) + + result = ser - pd.offsets.Second(5) + tm.assert_equal(result, expected) + + result2 = -pd.offsets.Second(5) + ser + tm.assert_equal(result2, expected) + msg = "(bad|unsupported) operand type for unary" + with pytest.raises(TypeError, match=msg): + pd.offsets.Second(5) - ser + + @pytest.mark.parametrize( + "cls_name", ["Day", "Hour", "Minute", "Second", "Milli", "Micro", "Nano"] + ) + def test_dt64arr_add_sub_tick_DateOffset_smoke(self, cls_name, box_with_array): + # GH#4532 + # smoke tests for valid DateOffsets + ser = Series([Timestamp("20130101 9:01"), Timestamp("20130101 9:02")]) + ser = tm.box_expected(ser, box_with_array) + + offset_cls = getattr(pd.offsets, cls_name) + ser + offset_cls(5) + offset_cls(5) + ser + ser - offset_cls(5) + + def test_dti_add_tick_tzaware(self, tz_aware_fixture, box_with_array): + # GH#21610, GH#22163 ensure DataFrame doesn't return object-dtype + tz = tz_aware_fixture + if tz == "US/Pacific": + dates = date_range("2012-11-01", periods=3, tz=tz) + offset = dates + pd.offsets.Hour(5) + assert dates[0] + pd.offsets.Hour(5) == offset[0] + + dates = date_range("2010-11-01 00:00", periods=3, tz=tz, freq="h") + expected = DatetimeIndex( + ["2010-11-01 05:00", "2010-11-01 06:00", "2010-11-01 07:00"], + freq="h", + tz=tz, + ).as_unit("ns") + + dates = tm.box_expected(dates, box_with_array) + expected = tm.box_expected(expected, box_with_array) + + for scalar in [pd.offsets.Hour(5), np.timedelta64(5, "h"), timedelta(hours=5)]: + offset = dates + scalar + tm.assert_equal(offset, expected) + offset = scalar + dates + tm.assert_equal(offset, expected) + + roundtrip = offset - scalar + tm.assert_equal(roundtrip, dates) + + msg = "|".join( + ["bad operand type for unary -", "cannot subtract DatetimeArray"] + ) + with pytest.raises(TypeError, match=msg): + scalar - dates + + # ------------------------------------------------------------- + # RelativeDelta DateOffsets + + @pytest.mark.parametrize("unit", ["s", "ms", "us", "ns"]) + def test_dt64arr_add_sub_relativedelta_offsets(self, box_with_array, unit): + # GH#10699 + vec = DatetimeIndex( + [ + Timestamp("2000-01-05 00:15:00"), + Timestamp("2000-01-31 00:23:00"), + Timestamp("2000-01-01"), + Timestamp("2000-03-31"), + Timestamp("2000-02-29"), + Timestamp("2000-12-31"), + Timestamp("2000-05-15"), + Timestamp("2001-06-15"), + ] + ).as_unit(unit) + vec = tm.box_expected(vec, box_with_array) + vec_items = vec.iloc[0] if box_with_array is pd.DataFrame else vec + + # DateOffset relativedelta fastpath + relative_kwargs = [ + ("years", 2), + ("months", 5), + ("days", 3), + ("hours", 5), + ("minutes", 10), + ("seconds", 2), + ("microseconds", 5), + ] + for i, (offset_unit, value) in enumerate(relative_kwargs): + off = DateOffset(**{offset_unit: value}) + + exp_unit = unit + if offset_unit == "microseconds" and unit != "ns": + exp_unit = "us" + + # TODO(GH#55564): as_unit will be unnecessary + expected = DatetimeIndex([x + off for x in vec_items]).as_unit(exp_unit) + expected = tm.box_expected(expected, box_with_array) + tm.assert_equal(expected, vec + off) + + expected = DatetimeIndex([x - off for x in vec_items]).as_unit(exp_unit) + expected = tm.box_expected(expected, box_with_array) + tm.assert_equal(expected, vec - off) + + off = DateOffset(**dict(relative_kwargs[: i + 1])) + + expected = DatetimeIndex([x + off for x in vec_items]).as_unit(exp_unit) + expected = tm.box_expected(expected, box_with_array) + tm.assert_equal(expected, vec + off) + + expected = DatetimeIndex([x - off for x in vec_items]).as_unit(exp_unit) + expected = tm.box_expected(expected, box_with_array) + tm.assert_equal(expected, vec - off) + msg = "(bad|unsupported) operand type for unary" + with pytest.raises(TypeError, match=msg): + off - vec + + # ------------------------------------------------------------- + # Non-Tick, Non-RelativeDelta DateOffsets + + # TODO: redundant with test_dt64arr_add_sub_DateOffset? that includes + # tz-aware cases which this does not + @pytest.mark.filterwarnings("ignore::pandas.errors.PerformanceWarning") + @pytest.mark.parametrize( + "cls_and_kwargs", + [ + "YearBegin", + ("YearBegin", {"month": 5}), + "YearEnd", + ("YearEnd", {"month": 5}), + "MonthBegin", + "MonthEnd", + "SemiMonthEnd", + "SemiMonthBegin", + "Week", + ("Week", {"weekday": 3}), + "Week", + ("Week", {"weekday": 6}), + "BusinessDay", + "BDay", + "QuarterEnd", + "QuarterBegin", + "CustomBusinessDay", + "CDay", + "CBMonthEnd", + "CBMonthBegin", + "BMonthBegin", + "BMonthEnd", + "BusinessHour", + "BYearBegin", + "BYearEnd", + "BQuarterBegin", + ("LastWeekOfMonth", {"weekday": 2}), + ( + "FY5253Quarter", + { + "qtr_with_extra_week": 1, + "startingMonth": 1, + "weekday": 2, + "variation": "nearest", + }, + ), + ("FY5253", {"weekday": 0, "startingMonth": 2, "variation": "nearest"}), + ("WeekOfMonth", {"weekday": 2, "week": 2}), + "Easter", + ("DateOffset", {"day": 4}), + ("DateOffset", {"month": 5}), + ], + ) + @pytest.mark.parametrize("normalize", [True, False]) + @pytest.mark.parametrize("n", [0, 5]) + @pytest.mark.parametrize("unit", ["s", "ms", "us", "ns"]) + @pytest.mark.parametrize("tz", [None, "US/Central"]) + def test_dt64arr_add_sub_DateOffsets( + self, box_with_array, n, normalize, cls_and_kwargs, unit, tz + ): + # GH#10699 + # assert vectorized operation matches pointwise operations + + if isinstance(cls_and_kwargs, tuple): + # If cls_name param is a tuple, then 2nd entry is kwargs for + # the offset constructor + cls_name, kwargs = cls_and_kwargs + else: + cls_name = cls_and_kwargs + kwargs = {} + + if n == 0 and cls_name in [ + "WeekOfMonth", + "LastWeekOfMonth", + "FY5253Quarter", + "FY5253", + ]: + # passing n = 0 is invalid for these offset classes + return + + vec = ( + DatetimeIndex( + [ + Timestamp("2000-01-05 00:15:00"), + Timestamp("2000-01-31 00:23:00"), + Timestamp("2000-01-01"), + Timestamp("2000-03-31"), + Timestamp("2000-02-29"), + Timestamp("2000-12-31"), + Timestamp("2000-05-15"), + Timestamp("2001-06-15"), + ] + ) + .as_unit(unit) + .tz_localize(tz) + ) + vec = tm.box_expected(vec, box_with_array) + vec_items = vec.iloc[0] if box_with_array is pd.DataFrame else vec + + offset_cls = getattr(pd.offsets, cls_name) + offset = offset_cls(n, normalize=normalize, **kwargs) + + # TODO(GH#55564): as_unit will be unnecessary + expected = DatetimeIndex([x + offset for x in vec_items]).as_unit(unit) + expected = tm.box_expected(expected, box_with_array) + tm.assert_equal(expected, vec + offset) + tm.assert_equal(expected, offset + vec) + + expected = DatetimeIndex([x - offset for x in vec_items]).as_unit(unit) + expected = tm.box_expected(expected, box_with_array) + tm.assert_equal(expected, vec - offset) + + expected = DatetimeIndex([offset + x for x in vec_items]).as_unit(unit) + expected = tm.box_expected(expected, box_with_array) + tm.assert_equal(expected, offset + vec) + msg = "(bad|unsupported) operand type for unary" + with pytest.raises(TypeError, match=msg): + offset - vec + + @pytest.mark.parametrize( + "other", + [ + np.array([pd.offsets.MonthEnd(), pd.offsets.Day(n=2)]), + np.array([pd.offsets.DateOffset(years=1), pd.offsets.MonthEnd()]), + np.array( # matching offsets + [pd.offsets.DateOffset(years=1), pd.offsets.DateOffset(years=1)] + ), + ], + ) + @pytest.mark.parametrize("op", [operator.add, roperator.radd, operator.sub]) + def test_dt64arr_add_sub_offset_array( + self, tz_naive_fixture, box_with_array, op, other + ): + # GH#18849 + # GH#10699 array of offsets + + tz = tz_naive_fixture + dti = date_range("2017-01-01", periods=2, tz=tz) + dtarr = tm.box_expected(dti, box_with_array) + + expected = DatetimeIndex([op(dti[n], other[n]) for n in range(len(dti))]) + expected = tm.box_expected(expected, box_with_array).astype(object) + + with tm.assert_produces_warning(PerformanceWarning): + res = op(dtarr, other) + tm.assert_equal(res, expected) + + # Same thing but boxing other + other = tm.box_expected(other, box_with_array) + if box_with_array is pd.array and op is roperator.radd: + # We expect a NumpyExtensionArray, not ndarray[object] here + expected = pd.array(expected, dtype=object) + with tm.assert_produces_warning(PerformanceWarning): + res = op(dtarr, other) + tm.assert_equal(res, expected) + + @pytest.mark.parametrize( + "op, offset, exp, exp_freq", + [ + ( + "__add__", + DateOffset(months=3, days=10), + [ + Timestamp("2014-04-11"), + Timestamp("2015-04-11"), + Timestamp("2016-04-11"), + Timestamp("2017-04-11"), + ], + None, + ), + ( + "__add__", + DateOffset(months=3), + [ + Timestamp("2014-04-01"), + Timestamp("2015-04-01"), + Timestamp("2016-04-01"), + Timestamp("2017-04-01"), + ], + "YS-APR", + ), + ( + "__sub__", + DateOffset(months=3, days=10), + [ + Timestamp("2013-09-21"), + Timestamp("2014-09-21"), + Timestamp("2015-09-21"), + Timestamp("2016-09-21"), + ], + None, + ), + ( + "__sub__", + DateOffset(months=3), + [ + Timestamp("2013-10-01"), + Timestamp("2014-10-01"), + Timestamp("2015-10-01"), + Timestamp("2016-10-01"), + ], + "YS-OCT", + ), + ], + ) + def test_dti_add_sub_nonzero_mth_offset( + self, op, offset, exp, exp_freq, tz_aware_fixture, box_with_array + ): + # GH 26258 + tz = tz_aware_fixture + date = date_range(start="01 Jan 2014", end="01 Jan 2017", freq="YS", tz=tz) + date = tm.box_expected(date, box_with_array, False) + mth = getattr(date, op) + result = mth(offset) + + expected = DatetimeIndex(exp, tz=tz).as_unit("ns") + expected = tm.box_expected(expected, box_with_array, False) + tm.assert_equal(result, expected) + + def test_dt64arr_series_add_DateOffset_with_milli(self): + # GH 57529 + dti = DatetimeIndex( + [ + "2000-01-01 00:00:00.012345678", + "2000-01-31 00:00:00.012345678", + "2000-02-29 00:00:00.012345678", + ], + dtype="datetime64[ns]", + ) + result = dti + DateOffset(milliseconds=4) + expected = DatetimeIndex( + [ + "2000-01-01 00:00:00.016345678", + "2000-01-31 00:00:00.016345678", + "2000-02-29 00:00:00.016345678", + ], + dtype="datetime64[ns]", + ) + tm.assert_index_equal(result, expected) + + result = dti + DateOffset(days=1, milliseconds=4) + expected = DatetimeIndex( + [ + "2000-01-02 00:00:00.016345678", + "2000-02-01 00:00:00.016345678", + "2000-03-01 00:00:00.016345678", + ], + dtype="datetime64[ns]", + ) + tm.assert_index_equal(result, expected) + + +class TestDatetime64OverflowHandling: + # TODO: box + de-duplicate + + def test_dt64_overflow_masking(self, box_with_array): + # GH#25317 + left = Series([Timestamp("1969-12-31")], dtype="M8[ns]") + right = Series([NaT]) + + left = tm.box_expected(left, box_with_array) + right = tm.box_expected(right, box_with_array) + + expected = TimedeltaIndex([NaT], dtype="m8[ns]") + expected = tm.box_expected(expected, box_with_array) + + result = left - right + tm.assert_equal(result, expected) + + def test_dt64_series_arith_overflow(self): + # GH#12534, fixed by GH#19024 + dt = Timestamp("1700-01-31") + td = Timedelta("20000 Days") + dti = date_range("1949-09-30", freq="100YE", periods=4) + ser = Series(dti) + msg = "Overflow in int64 addition" + with pytest.raises(OverflowError, match=msg): + ser - dt + with pytest.raises(OverflowError, match=msg): + dt - ser + with pytest.raises(OverflowError, match=msg): + ser + td + with pytest.raises(OverflowError, match=msg): + td + ser + + ser.iloc[-1] = NaT + expected = Series( + ["2004-10-03", "2104-10-04", "2204-10-04", "NaT"], dtype="datetime64[ns]" + ) + res = ser + td + tm.assert_series_equal(res, expected) + res = td + ser + tm.assert_series_equal(res, expected) + + ser.iloc[1:] = NaT + expected = Series(["91279 Days", "NaT", "NaT", "NaT"], dtype="timedelta64[ns]") + res = ser - dt + tm.assert_series_equal(res, expected) + res = dt - ser + tm.assert_series_equal(res, -expected) + + def test_datetimeindex_sub_timestamp_overflow(self): + dtimax = pd.to_datetime(["2021-12-28 17:19", Timestamp.max]).as_unit("ns") + dtimin = pd.to_datetime(["2021-12-28 17:19", Timestamp.min]).as_unit("ns") + + tsneg = Timestamp("1950-01-01").as_unit("ns") + ts_neg_variants = [ + tsneg, + tsneg.to_pydatetime(), + tsneg.to_datetime64().astype("datetime64[ns]"), + tsneg.to_datetime64().astype("datetime64[D]"), + ] + + tspos = Timestamp("1980-01-01").as_unit("ns") + ts_pos_variants = [ + tspos, + tspos.to_pydatetime(), + tspos.to_datetime64().astype("datetime64[ns]"), + tspos.to_datetime64().astype("datetime64[D]"), + ] + msg = "Overflow in int64 addition" + for variant in ts_neg_variants: + with pytest.raises(OverflowError, match=msg): + dtimax - variant + + expected = Timestamp.max._value - tspos._value + for variant in ts_pos_variants: + res = dtimax - variant + assert res[1]._value == expected + + expected = Timestamp.min._value - tsneg._value + for variant in ts_neg_variants: + res = dtimin - variant + assert res[1]._value == expected + + for variant in ts_pos_variants: + with pytest.raises(OverflowError, match=msg): + dtimin - variant + + def test_datetimeindex_sub_datetimeindex_overflow(self): + # GH#22492, GH#22508 + dtimax = pd.to_datetime(["2021-12-28 17:19", Timestamp.max]).as_unit("ns") + dtimin = pd.to_datetime(["2021-12-28 17:19", Timestamp.min]).as_unit("ns") + + ts_neg = pd.to_datetime(["1950-01-01", "1950-01-01"]).as_unit("ns") + ts_pos = pd.to_datetime(["1980-01-01", "1980-01-01"]).as_unit("ns") + + # General tests + expected = Timestamp.max._value - ts_pos[1]._value + result = dtimax - ts_pos + assert result[1]._value == expected + + expected = Timestamp.min._value - ts_neg[1]._value + result = dtimin - ts_neg + assert result[1]._value == expected + msg = "Overflow in int64 addition" + with pytest.raises(OverflowError, match=msg): + dtimax - ts_neg + + with pytest.raises(OverflowError, match=msg): + dtimin - ts_pos + + # Edge cases + tmin = pd.to_datetime([Timestamp.min]) + t1 = tmin + Timedelta.max + Timedelta("1us") + with pytest.raises(OverflowError, match=msg): + t1 - tmin + + tmax = pd.to_datetime([Timestamp.max]) + t2 = tmax + Timedelta.min - Timedelta("1us") + with pytest.raises(OverflowError, match=msg): + tmax - t2 + + +class TestTimestampSeriesArithmetic: + def test_empty_series_add_sub(self, box_with_array): + # GH#13844 + a = Series(dtype="M8[ns]") + b = Series(dtype="m8[ns]") + a = box_with_array(a) + b = box_with_array(b) + tm.assert_equal(a, a + b) + tm.assert_equal(a, a - b) + tm.assert_equal(a, b + a) + msg = "cannot subtract" + with pytest.raises(TypeError, match=msg): + b - a + + def test_operators_datetimelike(self): + # ## timedelta64 ### + td1 = Series([timedelta(minutes=5, seconds=3)] * 3) + td1.iloc[2] = np.nan + + # ## datetime64 ### + dt1 = Series( + [ + Timestamp("20111230"), + Timestamp("20120101"), + Timestamp("20120103"), + ] + ) + dt1.iloc[2] = np.nan + dt2 = Series( + [ + Timestamp("20111231"), + Timestamp("20120102"), + Timestamp("20120104"), + ] + ) + dt1 - dt2 + dt2 - dt1 + + # datetime64 with timetimedelta + dt1 + td1 + td1 + dt1 + dt1 - td1 + + # timetimedelta with datetime64 + td1 + dt1 + dt1 + td1 + + def test_dt64ser_sub_datetime_dtype(self, unit): + ts = Timestamp(datetime(1993, 1, 7, 13, 30, 00)) + dt = datetime(1993, 6, 22, 13, 30) + ser = Series([ts], dtype=f"M8[{unit}]") + result = ser - dt + + # the expected unit is the max of `unit` and the unit imputed to `dt`, + # which is "us" + exp_unit = tm.get_finest_unit(unit, "us") + assert result.dtype == f"timedelta64[{exp_unit}]" + + # ------------------------------------------------------------- + # TODO: This next block of tests came from tests.series.test_operators, + # needs to be de-duplicated and parametrized over `box` classes + + @pytest.mark.parametrize( + "left, right, op_fail", + [ + [ + [Timestamp("20111230"), Timestamp("20120101"), NaT], + [Timestamp("20111231"), Timestamp("20120102"), Timestamp("20120104")], + ["__sub__", "__rsub__"], + ], + [ + [Timestamp("20111230"), Timestamp("20120101"), NaT], + [timedelta(minutes=5, seconds=3), timedelta(minutes=5, seconds=3), NaT], + ["__add__", "__radd__", "__sub__"], + ], + [ + [ + Timestamp("20111230", tz="US/Eastern"), + Timestamp("20111230", tz="US/Eastern"), + NaT, + ], + [timedelta(minutes=5, seconds=3), NaT, timedelta(minutes=5, seconds=3)], + ["__add__", "__radd__", "__sub__"], + ], + ], + ) + def test_operators_datetimelike_invalid( + self, left, right, op_fail, all_arithmetic_operators + ): + # these are all TypeError ops + op_str = all_arithmetic_operators + arg1 = Series(left) + arg2 = Series(right) + # check that we are getting a TypeError + # with 'operate' (from core/ops.py) for the ops that are not + # defined + op = getattr(arg1, op_str, None) + # Previously, _validate_for_numeric_binop in core/indexes/base.py + # did this for us. + if op_str not in op_fail: + with pytest.raises( + TypeError, match="operate|[cC]annot|unsupported operand" + ): + op(arg2) + else: + # Smoke test + op(arg2) + + def test_sub_single_tz(self, unit): + # GH#12290 + s1 = Series([Timestamp("2016-02-10", tz="America/Sao_Paulo")]).dt.as_unit(unit) + s2 = Series([Timestamp("2016-02-08", tz="America/Sao_Paulo")]).dt.as_unit(unit) + result = s1 - s2 + expected = Series([Timedelta("2days")]).dt.as_unit(unit) + tm.assert_series_equal(result, expected) + result = s2 - s1 + expected = Series([Timedelta("-2days")]).dt.as_unit(unit) + tm.assert_series_equal(result, expected) + + def test_dt64tz_series_sub_dtitz(self): + # GH#19071 subtracting tzaware DatetimeIndex from tzaware Series + # (with same tz) raises, fixed by #19024 + dti = date_range("1999-09-30", periods=10, tz="US/Pacific") + ser = Series(dti) + expected = Series(TimedeltaIndex(["0days"] * 10)) + + res = dti - ser + tm.assert_series_equal(res, expected) + res = ser - dti + tm.assert_series_equal(res, expected) + + def test_sub_datetime_compat(self, unit): + # see GH#14088 + ser = Series([datetime(2016, 8, 23, 12, tzinfo=pytz.utc), NaT]).dt.as_unit(unit) + dt = datetime(2016, 8, 22, 12, tzinfo=pytz.utc) + # The datetime object has "us" so we upcast lower units + exp_unit = tm.get_finest_unit(unit, "us") + exp = Series([Timedelta("1 days"), NaT]).dt.as_unit(exp_unit) + result = ser - dt + tm.assert_series_equal(result, exp) + result2 = ser - Timestamp(dt) + tm.assert_series_equal(result2, exp) + + def test_dt64_series_add_mixed_tick_DateOffset(self): + # GH#4532 + # operate with pd.offsets + s = Series([Timestamp("20130101 9:01"), Timestamp("20130101 9:02")]) + + result = s + pd.offsets.Milli(5) + result2 = pd.offsets.Milli(5) + s + expected = Series( + [Timestamp("20130101 9:01:00.005"), Timestamp("20130101 9:02:00.005")] + ) + tm.assert_series_equal(result, expected) + tm.assert_series_equal(result2, expected) + + result = s + pd.offsets.Minute(5) + pd.offsets.Milli(5) + expected = Series( + [Timestamp("20130101 9:06:00.005"), Timestamp("20130101 9:07:00.005")] + ) + tm.assert_series_equal(result, expected) + + def test_datetime64_ops_nat(self, unit): + # GH#11349 + datetime_series = Series([NaT, Timestamp("19900315")]).dt.as_unit(unit) + nat_series_dtype_timestamp = Series([NaT, NaT], dtype=f"datetime64[{unit}]") + single_nat_dtype_datetime = Series([NaT], dtype=f"datetime64[{unit}]") + + # subtraction + tm.assert_series_equal(-NaT + datetime_series, nat_series_dtype_timestamp) + msg = "bad operand type for unary -: 'DatetimeArray'" + with pytest.raises(TypeError, match=msg): + -single_nat_dtype_datetime + datetime_series + + tm.assert_series_equal( + -NaT + nat_series_dtype_timestamp, nat_series_dtype_timestamp + ) + with pytest.raises(TypeError, match=msg): + -single_nat_dtype_datetime + nat_series_dtype_timestamp + + # addition + tm.assert_series_equal( + nat_series_dtype_timestamp + NaT, nat_series_dtype_timestamp + ) + tm.assert_series_equal( + NaT + nat_series_dtype_timestamp, nat_series_dtype_timestamp + ) + + tm.assert_series_equal( + nat_series_dtype_timestamp + NaT, nat_series_dtype_timestamp + ) + tm.assert_series_equal( + NaT + nat_series_dtype_timestamp, nat_series_dtype_timestamp + ) + + # ------------------------------------------------------------- + # Timezone-Centric Tests + + def test_operators_datetimelike_with_timezones(self): + tz = "US/Eastern" + dt1 = Series(date_range("2000-01-01 09:00:00", periods=5, tz=tz), name="foo") + dt2 = dt1.copy() + dt2.iloc[2] = np.nan + + td1 = Series(pd.timedelta_range("1 days 1 min", periods=5, freq="h")) + td2 = td1.copy() + td2.iloc[1] = np.nan + assert td2._values.freq is None + + result = dt1 + td1[0] + exp = (dt1.dt.tz_localize(None) + td1[0]).dt.tz_localize(tz) + tm.assert_series_equal(result, exp) + + result = dt2 + td2[0] + exp = (dt2.dt.tz_localize(None) + td2[0]).dt.tz_localize(tz) + tm.assert_series_equal(result, exp) + + # odd numpy behavior with scalar timedeltas + result = td1[0] + dt1 + exp = (dt1.dt.tz_localize(None) + td1[0]).dt.tz_localize(tz) + tm.assert_series_equal(result, exp) + + result = td2[0] + dt2 + exp = (dt2.dt.tz_localize(None) + td2[0]).dt.tz_localize(tz) + tm.assert_series_equal(result, exp) + + result = dt1 - td1[0] + exp = (dt1.dt.tz_localize(None) - td1[0]).dt.tz_localize(tz) + tm.assert_series_equal(result, exp) + msg = "(bad|unsupported) operand type for unary" + with pytest.raises(TypeError, match=msg): + td1[0] - dt1 + + result = dt2 - td2[0] + exp = (dt2.dt.tz_localize(None) - td2[0]).dt.tz_localize(tz) + tm.assert_series_equal(result, exp) + with pytest.raises(TypeError, match=msg): + td2[0] - dt2 + + result = dt1 + td1 + exp = (dt1.dt.tz_localize(None) + td1).dt.tz_localize(tz) + tm.assert_series_equal(result, exp) + + result = dt2 + td2 + exp = (dt2.dt.tz_localize(None) + td2).dt.tz_localize(tz) + tm.assert_series_equal(result, exp) + + result = dt1 - td1 + exp = (dt1.dt.tz_localize(None) - td1).dt.tz_localize(tz) + tm.assert_series_equal(result, exp) + + result = dt2 - td2 + exp = (dt2.dt.tz_localize(None) - td2).dt.tz_localize(tz) + tm.assert_series_equal(result, exp) + msg = "cannot (add|subtract)" + with pytest.raises(TypeError, match=msg): + td1 - dt1 + with pytest.raises(TypeError, match=msg): + td2 - dt2 + + +class TestDatetimeIndexArithmetic: + # ------------------------------------------------------------- + # Binary operations DatetimeIndex and TimedeltaIndex/array + + def test_dti_add_tdi(self, tz_naive_fixture): + # GH#17558 + tz = tz_naive_fixture + dti = DatetimeIndex([Timestamp("2017-01-01", tz=tz)] * 10) + tdi = pd.timedelta_range("0 days", periods=10) + expected = date_range("2017-01-01", periods=10, tz=tz) + expected = expected._with_freq(None) + + # add with TimedeltaIndex + result = dti + tdi + tm.assert_index_equal(result, expected) + + result = tdi + dti + tm.assert_index_equal(result, expected) + + # add with timedelta64 array + result = dti + tdi.values + tm.assert_index_equal(result, expected) + + result = tdi.values + dti + tm.assert_index_equal(result, expected) + + def test_dti_iadd_tdi(self, tz_naive_fixture): + # GH#17558 + tz = tz_naive_fixture + dti = DatetimeIndex([Timestamp("2017-01-01", tz=tz)] * 10) + tdi = pd.timedelta_range("0 days", periods=10) + expected = date_range("2017-01-01", periods=10, tz=tz) + expected = expected._with_freq(None) + + # iadd with TimedeltaIndex + result = DatetimeIndex([Timestamp("2017-01-01", tz=tz)] * 10) + result += tdi + tm.assert_index_equal(result, expected) + + result = pd.timedelta_range("0 days", periods=10) + result += dti + tm.assert_index_equal(result, expected) + + # iadd with timedelta64 array + result = DatetimeIndex([Timestamp("2017-01-01", tz=tz)] * 10) + result += tdi.values + tm.assert_index_equal(result, expected) + + result = pd.timedelta_range("0 days", periods=10) + result += dti + tm.assert_index_equal(result, expected) + + def test_dti_sub_tdi(self, tz_naive_fixture): + # GH#17558 + tz = tz_naive_fixture + dti = DatetimeIndex([Timestamp("2017-01-01", tz=tz)] * 10) + tdi = pd.timedelta_range("0 days", periods=10) + expected = date_range("2017-01-01", periods=10, tz=tz, freq="-1D") + expected = expected._with_freq(None) + + # sub with TimedeltaIndex + result = dti - tdi + tm.assert_index_equal(result, expected) + + msg = "cannot subtract .*TimedeltaArray" + with pytest.raises(TypeError, match=msg): + tdi - dti + + # sub with timedelta64 array + result = dti - tdi.values + tm.assert_index_equal(result, expected) + + msg = "cannot subtract a datelike from a TimedeltaArray" + with pytest.raises(TypeError, match=msg): + tdi.values - dti + + def test_dti_isub_tdi(self, tz_naive_fixture, unit): + # GH#17558 + tz = tz_naive_fixture + dti = DatetimeIndex([Timestamp("2017-01-01", tz=tz)] * 10).as_unit(unit) + tdi = pd.timedelta_range("0 days", periods=10, unit=unit) + expected = date_range("2017-01-01", periods=10, tz=tz, freq="-1D", unit=unit) + expected = expected._with_freq(None) + + # isub with TimedeltaIndex + result = DatetimeIndex([Timestamp("2017-01-01", tz=tz)] * 10).as_unit(unit) + result -= tdi + tm.assert_index_equal(result, expected) + + # DTA.__isub__ GH#43904 + dta = dti._data.copy() + dta -= tdi + tm.assert_datetime_array_equal(dta, expected._data) + + out = dti._data.copy() + np.subtract(out, tdi, out=out) + tm.assert_datetime_array_equal(out, expected._data) + + msg = "cannot subtract a datelike from a TimedeltaArray" + with pytest.raises(TypeError, match=msg): + tdi -= dti + + # isub with timedelta64 array + result = DatetimeIndex([Timestamp("2017-01-01", tz=tz)] * 10).as_unit(unit) + result -= tdi.values + tm.assert_index_equal(result, expected) + + with pytest.raises(TypeError, match=msg): + tdi.values -= dti + + with pytest.raises(TypeError, match=msg): + tdi._values -= dti + + # ------------------------------------------------------------- + # Binary Operations DatetimeIndex and datetime-like + # TODO: A couple other tests belong in this section. Move them in + # A PR where there isn't already a giant diff. + + # ------------------------------------------------------------- + + def test_dta_add_sub_index(self, tz_naive_fixture): + # Check that DatetimeArray defers to Index classes + dti = date_range("20130101", periods=3, tz=tz_naive_fixture) + dta = dti.array + result = dta - dti + expected = dti - dti + tm.assert_index_equal(result, expected) + + tdi = result + result = dta + tdi + expected = dti + tdi + tm.assert_index_equal(result, expected) + + result = dta - tdi + expected = dti - tdi + tm.assert_index_equal(result, expected) + + def test_sub_dti_dti(self, unit): + # previously performed setop (deprecated in 0.16.0), now changed to + # return subtraction -> TimeDeltaIndex (GH ...) + + dti = date_range("20130101", periods=3, unit=unit) + dti_tz = date_range("20130101", periods=3, unit=unit).tz_localize("US/Eastern") + expected = TimedeltaIndex([0, 0, 0]).as_unit(unit) + + result = dti - dti + tm.assert_index_equal(result, expected) + + result = dti_tz - dti_tz + tm.assert_index_equal(result, expected) + msg = "Cannot subtract tz-naive and tz-aware datetime-like objects" + with pytest.raises(TypeError, match=msg): + dti_tz - dti + + with pytest.raises(TypeError, match=msg): + dti - dti_tz + + # isub + dti -= dti + tm.assert_index_equal(dti, expected) + + # different length raises ValueError + dti1 = date_range("20130101", periods=3, unit=unit) + dti2 = date_range("20130101", periods=4, unit=unit) + msg = "cannot add indices of unequal length" + with pytest.raises(ValueError, match=msg): + dti1 - dti2 + + # NaN propagation + dti1 = DatetimeIndex(["2012-01-01", np.nan, "2012-01-03"]).as_unit(unit) + dti2 = DatetimeIndex(["2012-01-02", "2012-01-03", np.nan]).as_unit(unit) + expected = TimedeltaIndex(["1 days", np.nan, np.nan]).as_unit(unit) + result = dti2 - dti1 + tm.assert_index_equal(result, expected) + + # ------------------------------------------------------------------- + # TODO: Most of this block is moved from series or frame tests, needs + # cleanup, box-parametrization, and de-duplication + + @pytest.mark.parametrize("op", [operator.add, operator.sub]) + def test_timedelta64_equal_timedelta_supported_ops(self, op, box_with_array): + ser = Series( + [ + Timestamp("20130301"), + Timestamp("20130228 23:00:00"), + Timestamp("20130228 22:00:00"), + Timestamp("20130228 21:00:00"), + ] + ) + obj = box_with_array(ser) + + intervals = ["D", "h", "m", "s", "us"] + + def timedelta64(*args): + # see casting notes in NumPy gh-12927 + return np.sum(list(starmap(np.timedelta64, zip(args, intervals)))) + + for d, h, m, s, us in product(*([range(2)] * 5)): + nptd = timedelta64(d, h, m, s, us) + pytd = timedelta(days=d, hours=h, minutes=m, seconds=s, microseconds=us) + lhs = op(obj, nptd) + rhs = op(obj, pytd) + + tm.assert_equal(lhs, rhs) + + def test_ops_nat_mixed_datetime64_timedelta64(self): + # GH#11349 + timedelta_series = Series([NaT, Timedelta("1s")]) + datetime_series = Series([NaT, Timestamp("19900315")]) + nat_series_dtype_timedelta = Series([NaT, NaT], dtype="timedelta64[ns]") + nat_series_dtype_timestamp = Series([NaT, NaT], dtype="datetime64[ns]") + single_nat_dtype_datetime = Series([NaT], dtype="datetime64[ns]") + single_nat_dtype_timedelta = Series([NaT], dtype="timedelta64[ns]") + + # subtraction + tm.assert_series_equal( + datetime_series - single_nat_dtype_datetime, nat_series_dtype_timedelta + ) + + tm.assert_series_equal( + datetime_series - single_nat_dtype_timedelta, nat_series_dtype_timestamp + ) + tm.assert_series_equal( + -single_nat_dtype_timedelta + datetime_series, nat_series_dtype_timestamp + ) + + # without a Series wrapping the NaT, it is ambiguous + # whether it is a datetime64 or timedelta64 + # defaults to interpreting it as timedelta64 + tm.assert_series_equal( + nat_series_dtype_timestamp - single_nat_dtype_datetime, + nat_series_dtype_timedelta, + ) + + tm.assert_series_equal( + nat_series_dtype_timestamp - single_nat_dtype_timedelta, + nat_series_dtype_timestamp, + ) + tm.assert_series_equal( + -single_nat_dtype_timedelta + nat_series_dtype_timestamp, + nat_series_dtype_timestamp, + ) + msg = "cannot subtract a datelike" + with pytest.raises(TypeError, match=msg): + timedelta_series - single_nat_dtype_datetime + + # addition + tm.assert_series_equal( + nat_series_dtype_timestamp + single_nat_dtype_timedelta, + nat_series_dtype_timestamp, + ) + tm.assert_series_equal( + single_nat_dtype_timedelta + nat_series_dtype_timestamp, + nat_series_dtype_timestamp, + ) + + tm.assert_series_equal( + nat_series_dtype_timestamp + single_nat_dtype_timedelta, + nat_series_dtype_timestamp, + ) + tm.assert_series_equal( + single_nat_dtype_timedelta + nat_series_dtype_timestamp, + nat_series_dtype_timestamp, + ) + + tm.assert_series_equal( + nat_series_dtype_timedelta + single_nat_dtype_datetime, + nat_series_dtype_timestamp, + ) + tm.assert_series_equal( + single_nat_dtype_datetime + nat_series_dtype_timedelta, + nat_series_dtype_timestamp, + ) + + def test_ufunc_coercions(self, unit): + idx = date_range("2011-01-01", periods=3, freq="2D", name="x", unit=unit) + + delta = np.timedelta64(1, "D") + exp = date_range("2011-01-02", periods=3, freq="2D", name="x", unit=unit) + for result in [idx + delta, np.add(idx, delta)]: + assert isinstance(result, DatetimeIndex) + tm.assert_index_equal(result, exp) + assert result.freq == "2D" + + exp = date_range("2010-12-31", periods=3, freq="2D", name="x", unit=unit) + + for result in [idx - delta, np.subtract(idx, delta)]: + assert isinstance(result, DatetimeIndex) + tm.assert_index_equal(result, exp) + assert result.freq == "2D" + + # When adding/subtracting an ndarray (which has no .freq), the result + # does not infer freq + idx = idx._with_freq(None) + delta = np.array( + [np.timedelta64(1, "D"), np.timedelta64(2, "D"), np.timedelta64(3, "D")] + ) + exp = DatetimeIndex( + ["2011-01-02", "2011-01-05", "2011-01-08"], name="x" + ).as_unit(unit) + + for result in [idx + delta, np.add(idx, delta)]: + tm.assert_index_equal(result, exp) + assert result.freq == exp.freq + + exp = DatetimeIndex( + ["2010-12-31", "2011-01-01", "2011-01-02"], name="x" + ).as_unit(unit) + for result in [idx - delta, np.subtract(idx, delta)]: + assert isinstance(result, DatetimeIndex) + tm.assert_index_equal(result, exp) + assert result.freq == exp.freq + + def test_dti_add_series(self, tz_naive_fixture, names): + # GH#13905 + tz = tz_naive_fixture + index = DatetimeIndex( + ["2016-06-28 05:30", "2016-06-28 05:31"], tz=tz, name=names[0] + ).as_unit("ns") + ser = Series([Timedelta(seconds=5)] * 2, index=index, name=names[1]) + expected = Series(index + Timedelta(seconds=5), index=index, name=names[2]) + + # passing name arg isn't enough when names[2] is None + expected.name = names[2] + assert expected.dtype == index.dtype + result = ser + index + tm.assert_series_equal(result, expected) + result2 = index + ser + tm.assert_series_equal(result2, expected) + + expected = index + Timedelta(seconds=5) + result3 = ser.values + index + tm.assert_index_equal(result3, expected) + result4 = index + ser.values + tm.assert_index_equal(result4, expected) + + @pytest.mark.parametrize("op", [operator.add, roperator.radd, operator.sub]) + def test_dti_addsub_offset_arraylike( + self, tz_naive_fixture, names, op, index_or_series + ): + # GH#18849, GH#19744 + other_box = index_or_series + + tz = tz_naive_fixture + dti = date_range("2017-01-01", periods=2, tz=tz, name=names[0]) + other = other_box([pd.offsets.MonthEnd(), pd.offsets.Day(n=2)], name=names[1]) + + xbox = get_upcast_box(dti, other) + + with tm.assert_produces_warning(PerformanceWarning): + res = op(dti, other) + + expected = DatetimeIndex( + [op(dti[n], other[n]) for n in range(len(dti))], name=names[2], freq="infer" + ) + expected = tm.box_expected(expected, xbox).astype(object) + tm.assert_equal(res, expected) + + @pytest.mark.parametrize("other_box", [pd.Index, np.array]) + def test_dti_addsub_object_arraylike( + self, tz_naive_fixture, box_with_array, other_box + ): + tz = tz_naive_fixture + + dti = date_range("2017-01-01", periods=2, tz=tz) + dtarr = tm.box_expected(dti, box_with_array) + other = other_box([pd.offsets.MonthEnd(), Timedelta(days=4)]) + xbox = get_upcast_box(dtarr, other) + + expected = DatetimeIndex(["2017-01-31", "2017-01-06"], tz=tz_naive_fixture) + expected = tm.box_expected(expected, xbox).astype(object) + + with tm.assert_produces_warning(PerformanceWarning): + result = dtarr + other + tm.assert_equal(result, expected) + + expected = DatetimeIndex(["2016-12-31", "2016-12-29"], tz=tz_naive_fixture) + expected = tm.box_expected(expected, xbox).astype(object) + + with tm.assert_produces_warning(PerformanceWarning): + result = dtarr - other + tm.assert_equal(result, expected) + + +@pytest.mark.parametrize("years", [-1, 0, 1]) +@pytest.mark.parametrize("months", [-2, 0, 2]) +@pytest.mark.parametrize("unit", ["s", "ms", "us", "ns"]) +def test_shift_months(years, months, unit): + dti = DatetimeIndex( + [ + Timestamp("2000-01-05 00:15:00"), + Timestamp("2000-01-31 00:23:00"), + Timestamp("2000-01-01"), + Timestamp("2000-02-29"), + Timestamp("2000-12-31"), + ] + ).as_unit(unit) + shifted = shift_months(dti.asi8, years * 12 + months, reso=dti._data._creso) + shifted_dt64 = shifted.view(f"M8[{dti.unit}]") + actual = DatetimeIndex(shifted_dt64) + + raw = [x + pd.offsets.DateOffset(years=years, months=months) for x in dti] + expected = DatetimeIndex(raw).as_unit(dti.unit) + tm.assert_index_equal(actual, expected) + + +def test_dt64arr_addsub_object_dtype_2d(): + # block-wise DataFrame operations will require operating on 2D + # DatetimeArray/TimedeltaArray, so check that specifically. + dti = date_range("1994-02-13", freq="2W", periods=4) + dta = dti._data.reshape((4, 1)) + + other = np.array([[pd.offsets.Day(n)] for n in range(4)]) + assert other.shape == dta.shape + + with tm.assert_produces_warning(PerformanceWarning): + result = dta + other + with tm.assert_produces_warning(PerformanceWarning): + expected = (dta[:, 0] + other[:, 0]).reshape(-1, 1) + + tm.assert_numpy_array_equal(result, expected) + + with tm.assert_produces_warning(PerformanceWarning): + # Case where we expect to get a TimedeltaArray back + result2 = dta - dta.astype(object) + + assert result2.shape == (4, 1) + assert all(td._value == 0 for td in result2.ravel()) + + +def test_non_nano_dt64_addsub_np_nat_scalars(): + # GH 52295 + ser = Series([1233242342344, 232432434324, 332434242344], dtype="datetime64[ms]") + result = ser - np.datetime64("nat", "ms") + expected = Series([NaT] * 3, dtype="timedelta64[ms]") + tm.assert_series_equal(result, expected) + + result = ser + np.timedelta64("nat", "ms") + expected = Series([NaT] * 3, dtype="datetime64[ms]") + tm.assert_series_equal(result, expected) + + +def test_non_nano_dt64_addsub_np_nat_scalars_unitless(): + # GH 52295 + # TODO: Can we default to the ser unit? + ser = Series([1233242342344, 232432434324, 332434242344], dtype="datetime64[ms]") + result = ser - np.datetime64("nat") + expected = Series([NaT] * 3, dtype="timedelta64[ns]") + tm.assert_series_equal(result, expected) + + result = ser + np.timedelta64("nat") + expected = Series([NaT] * 3, dtype="datetime64[ns]") + tm.assert_series_equal(result, expected) + + +def test_non_nano_dt64_addsub_np_nat_scalars_unsupported_unit(): + # GH 52295 + ser = Series([12332, 23243, 33243], dtype="datetime64[s]") + result = ser - np.datetime64("nat", "D") + expected = Series([NaT] * 3, dtype="timedelta64[s]") + tm.assert_series_equal(result, expected) + + result = ser + np.timedelta64("nat", "D") + expected = Series([NaT] * 3, dtype="datetime64[s]") + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/test_interval.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/test_interval.py new file mode 100644 index 0000000000000000000000000000000000000000..0e316cf419cb0d3be489f474a9c6d889e668e7c9 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/test_interval.py @@ -0,0 +1,306 @@ +import operator + +import numpy as np +import pytest + +from pandas.core.dtypes.common import is_list_like + +import pandas as pd +from pandas import ( + Categorical, + Index, + Interval, + IntervalIndex, + Period, + Series, + Timedelta, + Timestamp, + date_range, + period_range, + timedelta_range, +) +import pandas._testing as tm +from pandas.core.arrays import ( + BooleanArray, + IntervalArray, +) +from pandas.tests.arithmetic.common import get_upcast_box + + +@pytest.fixture( + params=[ + (Index([0, 2, 4, 4]), Index([1, 3, 5, 8])), + (Index([0.0, 1.0, 2.0, np.nan]), Index([1.0, 2.0, 3.0, np.nan])), + ( + timedelta_range("0 days", periods=3).insert(3, pd.NaT), + timedelta_range("1 day", periods=3).insert(3, pd.NaT), + ), + ( + date_range("20170101", periods=3).insert(3, pd.NaT), + date_range("20170102", periods=3).insert(3, pd.NaT), + ), + ( + date_range("20170101", periods=3, tz="US/Eastern").insert(3, pd.NaT), + date_range("20170102", periods=3, tz="US/Eastern").insert(3, pd.NaT), + ), + ], + ids=lambda x: str(x[0].dtype), +) +def left_right_dtypes(request): + """ + Fixture for building an IntervalArray from various dtypes + """ + return request.param + + +@pytest.fixture +def interval_array(left_right_dtypes): + """ + Fixture to generate an IntervalArray of various dtypes containing NA if possible + """ + left, right = left_right_dtypes + return IntervalArray.from_arrays(left, right) + + +def create_categorical_intervals(left, right, closed="right"): + return Categorical(IntervalIndex.from_arrays(left, right, closed)) + + +def create_series_intervals(left, right, closed="right"): + return Series(IntervalArray.from_arrays(left, right, closed)) + + +def create_series_categorical_intervals(left, right, closed="right"): + return Series(Categorical(IntervalIndex.from_arrays(left, right, closed))) + + +class TestComparison: + @pytest.fixture(params=[operator.eq, operator.ne]) + def op(self, request): + return request.param + + @pytest.fixture( + params=[ + IntervalArray.from_arrays, + IntervalIndex.from_arrays, + create_categorical_intervals, + create_series_intervals, + create_series_categorical_intervals, + ], + ids=[ + "IntervalArray", + "IntervalIndex", + "Categorical[Interval]", + "Series[Interval]", + "Series[Categorical[Interval]]", + ], + ) + def interval_constructor(self, request): + """ + Fixture for all pandas native interval constructors. + To be used as the LHS of IntervalArray comparisons. + """ + return request.param + + def elementwise_comparison(self, op, interval_array, other): + """ + Helper that performs elementwise comparisons between `array` and `other` + """ + other = other if is_list_like(other) else [other] * len(interval_array) + expected = np.array([op(x, y) for x, y in zip(interval_array, other)]) + if isinstance(other, Series): + return Series(expected, index=other.index) + return expected + + def test_compare_scalar_interval(self, op, interval_array): + # matches first interval + other = interval_array[0] + result = op(interval_array, other) + expected = self.elementwise_comparison(op, interval_array, other) + tm.assert_numpy_array_equal(result, expected) + + # matches on a single endpoint but not both + other = Interval(interval_array.left[0], interval_array.right[1]) + result = op(interval_array, other) + expected = self.elementwise_comparison(op, interval_array, other) + tm.assert_numpy_array_equal(result, expected) + + def test_compare_scalar_interval_mixed_closed(self, op, closed, other_closed): + interval_array = IntervalArray.from_arrays(range(2), range(1, 3), closed=closed) + other = Interval(0, 1, closed=other_closed) + + result = op(interval_array, other) + expected = self.elementwise_comparison(op, interval_array, other) + tm.assert_numpy_array_equal(result, expected) + + def test_compare_scalar_na(self, op, interval_array, nulls_fixture, box_with_array): + box = box_with_array + obj = tm.box_expected(interval_array, box) + result = op(obj, nulls_fixture) + + if nulls_fixture is pd.NA: + # GH#31882 + exp = np.ones(interval_array.shape, dtype=bool) + expected = BooleanArray(exp, exp) + else: + expected = self.elementwise_comparison(op, interval_array, nulls_fixture) + + if not (box is Index and nulls_fixture is pd.NA): + # don't cast expected from BooleanArray to ndarray[object] + xbox = get_upcast_box(obj, nulls_fixture, True) + expected = tm.box_expected(expected, xbox) + + tm.assert_equal(result, expected) + + rev = op(nulls_fixture, obj) + tm.assert_equal(rev, expected) + + @pytest.mark.parametrize( + "other", + [ + 0, + 1.0, + True, + "foo", + Timestamp("2017-01-01"), + Timestamp("2017-01-01", tz="US/Eastern"), + Timedelta("0 days"), + Period("2017-01-01", "D"), + ], + ) + def test_compare_scalar_other(self, op, interval_array, other): + result = op(interval_array, other) + expected = self.elementwise_comparison(op, interval_array, other) + tm.assert_numpy_array_equal(result, expected) + + def test_compare_list_like_interval(self, op, interval_array, interval_constructor): + # same endpoints + other = interval_constructor(interval_array.left, interval_array.right) + result = op(interval_array, other) + expected = self.elementwise_comparison(op, interval_array, other) + tm.assert_equal(result, expected) + + # different endpoints + other = interval_constructor( + interval_array.left[::-1], interval_array.right[::-1] + ) + result = op(interval_array, other) + expected = self.elementwise_comparison(op, interval_array, other) + tm.assert_equal(result, expected) + + # all nan endpoints + other = interval_constructor([np.nan] * 4, [np.nan] * 4) + result = op(interval_array, other) + expected = self.elementwise_comparison(op, interval_array, other) + tm.assert_equal(result, expected) + + def test_compare_list_like_interval_mixed_closed( + self, op, interval_constructor, closed, other_closed + ): + interval_array = IntervalArray.from_arrays(range(2), range(1, 3), closed=closed) + other = interval_constructor(range(2), range(1, 3), closed=other_closed) + + result = op(interval_array, other) + expected = self.elementwise_comparison(op, interval_array, other) + tm.assert_equal(result, expected) + + @pytest.mark.parametrize( + "other", + [ + ( + Interval(0, 1), + Interval(Timedelta("1 day"), Timedelta("2 days")), + Interval(4, 5, "both"), + Interval(10, 20, "neither"), + ), + (0, 1.5, Timestamp("20170103"), np.nan), + ( + Timestamp("20170102", tz="US/Eastern"), + Timedelta("2 days"), + "baz", + pd.NaT, + ), + ], + ) + def test_compare_list_like_object(self, op, interval_array, other): + result = op(interval_array, other) + expected = self.elementwise_comparison(op, interval_array, other) + tm.assert_numpy_array_equal(result, expected) + + def test_compare_list_like_nan(self, op, interval_array, nulls_fixture): + other = [nulls_fixture] * 4 + result = op(interval_array, other) + expected = self.elementwise_comparison(op, interval_array, other) + + tm.assert_equal(result, expected) + + @pytest.mark.parametrize( + "other", + [ + np.arange(4, dtype="int64"), + np.arange(4, dtype="float64"), + date_range("2017-01-01", periods=4), + date_range("2017-01-01", periods=4, tz="US/Eastern"), + timedelta_range("0 days", periods=4), + period_range("2017-01-01", periods=4, freq="D"), + Categorical(list("abab")), + Categorical(date_range("2017-01-01", periods=4)), + pd.array(list("abcd")), + pd.array(["foo", 3.14, None, object()], dtype=object), + ], + ids=lambda x: str(x.dtype), + ) + def test_compare_list_like_other(self, op, interval_array, other): + result = op(interval_array, other) + expected = self.elementwise_comparison(op, interval_array, other) + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize("length", [1, 3, 5]) + @pytest.mark.parametrize("other_constructor", [IntervalArray, list]) + def test_compare_length_mismatch_errors(self, op, other_constructor, length): + interval_array = IntervalArray.from_arrays(range(4), range(1, 5)) + other = other_constructor([Interval(0, 1)] * length) + with pytest.raises(ValueError, match="Lengths must match to compare"): + op(interval_array, other) + + @pytest.mark.parametrize( + "constructor, expected_type, assert_func", + [ + (IntervalIndex, np.array, tm.assert_numpy_array_equal), + (Series, Series, tm.assert_series_equal), + ], + ) + def test_index_series_compat(self, op, constructor, expected_type, assert_func): + # IntervalIndex/Series that rely on IntervalArray for comparisons + breaks = range(4) + index = constructor(IntervalIndex.from_breaks(breaks)) + + # scalar comparisons + other = index[0] + result = op(index, other) + expected = expected_type(self.elementwise_comparison(op, index, other)) + assert_func(result, expected) + + other = breaks[0] + result = op(index, other) + expected = expected_type(self.elementwise_comparison(op, index, other)) + assert_func(result, expected) + + # list-like comparisons + other = IntervalArray.from_breaks(breaks) + result = op(index, other) + expected = expected_type(self.elementwise_comparison(op, index, other)) + assert_func(result, expected) + + other = [index[0], breaks[0], "foo"] + result = op(index, other) + expected = expected_type(self.elementwise_comparison(op, index, other)) + assert_func(result, expected) + + @pytest.mark.parametrize("scalars", ["a", False, 1, 1.0, None]) + def test_comparison_operations(self, scalars): + # GH #28981 + expected = Series([False, False]) + s = Series([Interval(0, 1), Interval(1, 2)], dtype="interval") + result = s == scalars + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/test_numeric.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/test_numeric.py new file mode 100644 index 0000000000000000000000000000000000000000..d8c1786b6b422c32a0f396b43f51d75b2b3ffe25 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/test_numeric.py @@ -0,0 +1,1567 @@ +# Arithmetic tests for DataFrame/Series/Index/Array classes that should +# behave identically. +# Specifically for numeric dtypes +from __future__ import annotations + +from collections import abc +from datetime import timedelta +from decimal import Decimal +import operator + +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + Index, + RangeIndex, + Series, + Timedelta, + TimedeltaIndex, + array, + date_range, +) +import pandas._testing as tm +from pandas.core import ops +from pandas.core.computation import expressions as expr +from pandas.tests.arithmetic.common import ( + assert_invalid_addsub_type, + assert_invalid_comparison, +) + + +@pytest.fixture(autouse=True, params=[0, 1000000], ids=["numexpr", "python"]) +def switch_numexpr_min_elements(request, monkeypatch): + with monkeypatch.context() as m: + m.setattr(expr, "_MIN_ELEMENTS", request.param) + yield request.param + + +@pytest.fixture(params=[Index, Series, tm.to_array]) +def box_pandas_1d_array(request): + """ + Fixture to test behavior for Index, Series and tm.to_array classes + """ + return request.param + + +@pytest.fixture( + params=[ + # TODO: add more dtypes here + Index(np.arange(5, dtype="float64")), + Index(np.arange(5, dtype="int64")), + Index(np.arange(5, dtype="uint64")), + RangeIndex(5), + ], + ids=lambda x: type(x).__name__, +) +def numeric_idx(request): + """ + Several types of numeric-dtypes Index objects + """ + return request.param + + +@pytest.fixture( + params=[Index, Series, tm.to_array, np.array, list], ids=lambda x: x.__name__ +) +def box_1d_array(request): + """ + Fixture to test behavior for Index, Series, tm.to_array, numpy Array and list + classes + """ + return request.param + + +def adjust_negative_zero(zero, expected): + """ + Helper to adjust the expected result if we are dividing by -0.0 + as opposed to 0.0 + """ + if np.signbit(np.array(zero)).any(): + # All entries in the `zero` fixture should be either + # all-negative or no-negative. + assert np.signbit(np.array(zero)).all() + + expected *= -1 + + return expected + + +def compare_op(series, other, op): + left = np.abs(series) if op in (ops.rpow, operator.pow) else series + right = np.abs(other) if op in (ops.rpow, operator.pow) else other + + cython_or_numpy = op(left, right) + python = left.combine(right, op) + if isinstance(other, Series) and not other.index.equals(series.index): + python.index = python.index._with_freq(None) + tm.assert_series_equal(cython_or_numpy, python) + + +# TODO: remove this kludge once mypy stops giving false positives here +# List comprehension has incompatible type List[PandasObject]; expected List[RangeIndex] +# See GH#29725 +_ldtypes = ["i1", "i2", "i4", "i8", "u1", "u2", "u4", "u8", "f2", "f4", "f8"] +lefts: list[Index | Series] = [RangeIndex(10, 40, 10)] +lefts.extend([Series([10, 20, 30], dtype=dtype) for dtype in _ldtypes]) +lefts.extend([Index([10, 20, 30], dtype=dtype) for dtype in _ldtypes if dtype != "f2"]) + +# ------------------------------------------------------------------ +# Comparisons + + +class TestNumericComparisons: + def test_operator_series_comparison_zerorank(self): + # GH#13006 + result = np.float64(0) > Series([1, 2, 3]) + expected = 0.0 > Series([1, 2, 3]) + tm.assert_series_equal(result, expected) + result = Series([1, 2, 3]) < np.float64(0) + expected = Series([1, 2, 3]) < 0.0 + tm.assert_series_equal(result, expected) + result = np.array([0, 1, 2])[0] > Series([0, 1, 2]) + expected = 0.0 > Series([1, 2, 3]) + tm.assert_series_equal(result, expected) + + def test_df_numeric_cmp_dt64_raises(self, box_with_array, fixed_now_ts): + # GH#8932, GH#22163 + ts = fixed_now_ts + obj = np.array(range(5)) + obj = tm.box_expected(obj, box_with_array) + + assert_invalid_comparison(obj, ts, box_with_array) + + def test_compare_invalid(self): + # GH#8058 + # ops testing + a = Series(np.random.default_rng(2).standard_normal(5), name=0) + b = Series(np.random.default_rng(2).standard_normal(5)) + b.name = pd.Timestamp("2000-01-01") + tm.assert_series_equal(a / b, 1 / (b / a)) + + def test_numeric_cmp_string_numexpr_path(self, box_with_array, monkeypatch): + # GH#36377, GH#35700 + box = box_with_array + xbox = box if box is not Index else np.ndarray + + obj = Series(np.random.default_rng(2).standard_normal(51)) + obj = tm.box_expected(obj, box, transpose=False) + with monkeypatch.context() as m: + m.setattr(expr, "_MIN_ELEMENTS", 50) + result = obj == "a" + + expected = Series(np.zeros(51, dtype=bool)) + expected = tm.box_expected(expected, xbox, transpose=False) + tm.assert_equal(result, expected) + + with monkeypatch.context() as m: + m.setattr(expr, "_MIN_ELEMENTS", 50) + result = obj != "a" + tm.assert_equal(result, ~expected) + + msg = "Invalid comparison between dtype=float64 and str" + with pytest.raises(TypeError, match=msg): + obj < "a" + + +# ------------------------------------------------------------------ +# Numeric dtypes Arithmetic with Datetime/Timedelta Scalar + + +class TestNumericArraylikeArithmeticWithDatetimeLike: + @pytest.mark.parametrize("box_cls", [np.array, Index, Series]) + @pytest.mark.parametrize( + "left", lefts, ids=lambda x: type(x).__name__ + str(x.dtype) + ) + def test_mul_td64arr(self, left, box_cls): + # GH#22390 + right = np.array([1, 2, 3], dtype="m8[s]") + right = box_cls(right) + + expected = TimedeltaIndex(["10s", "40s", "90s"], dtype=right.dtype) + + if isinstance(left, Series) or box_cls is Series: + expected = Series(expected) + assert expected.dtype == right.dtype + + result = left * right + tm.assert_equal(result, expected) + + result = right * left + tm.assert_equal(result, expected) + + @pytest.mark.parametrize("box_cls", [np.array, Index, Series]) + @pytest.mark.parametrize( + "left", lefts, ids=lambda x: type(x).__name__ + str(x.dtype) + ) + def test_div_td64arr(self, left, box_cls): + # GH#22390 + right = np.array([10, 40, 90], dtype="m8[s]") + right = box_cls(right) + + expected = TimedeltaIndex(["1s", "2s", "3s"], dtype=right.dtype) + if isinstance(left, Series) or box_cls is Series: + expected = Series(expected) + assert expected.dtype == right.dtype + + result = right / left + tm.assert_equal(result, expected) + + result = right // left + tm.assert_equal(result, expected) + + # (true_) needed for min-versions build 2022-12-26 + msg = "ufunc '(true_)?divide' cannot use operands with types" + with pytest.raises(TypeError, match=msg): + left / right + + msg = "ufunc 'floor_divide' cannot use operands with types" + with pytest.raises(TypeError, match=msg): + left // right + + # TODO: also test Tick objects; + # see test_numeric_arr_rdiv_tdscalar for note on these failing + @pytest.mark.parametrize( + "scalar_td", + [ + Timedelta(days=1), + Timedelta(days=1).to_timedelta64(), + Timedelta(days=1).to_pytimedelta(), + Timedelta(days=1).to_timedelta64().astype("timedelta64[s]"), + Timedelta(days=1).to_timedelta64().astype("timedelta64[ms]"), + ], + ids=lambda x: type(x).__name__, + ) + def test_numeric_arr_mul_tdscalar(self, scalar_td, numeric_idx, box_with_array): + # GH#19333 + box = box_with_array + index = numeric_idx + expected = TimedeltaIndex([Timedelta(days=n) for n in range(len(index))]) + if isinstance(scalar_td, np.timedelta64): + dtype = scalar_td.dtype + expected = expected.astype(dtype) + elif type(scalar_td) is timedelta: + expected = expected.astype("m8[us]") + + index = tm.box_expected(index, box) + expected = tm.box_expected(expected, box) + + result = index * scalar_td + tm.assert_equal(result, expected) + + commute = scalar_td * index + tm.assert_equal(commute, expected) + + @pytest.mark.parametrize( + "scalar_td", + [ + Timedelta(days=1), + Timedelta(days=1).to_timedelta64(), + Timedelta(days=1).to_pytimedelta(), + ], + ids=lambda x: type(x).__name__, + ) + @pytest.mark.parametrize("dtype", [np.int64, np.float64]) + def test_numeric_arr_mul_tdscalar_numexpr_path( + self, dtype, scalar_td, box_with_array + ): + # GH#44772 for the float64 case + box = box_with_array + + arr_i8 = np.arange(2 * 10**4).astype(np.int64, copy=False) + arr = arr_i8.astype(dtype, copy=False) + obj = tm.box_expected(arr, box, transpose=False) + + expected = arr_i8.view("timedelta64[D]").astype("timedelta64[ns]") + if type(scalar_td) is timedelta: + expected = expected.astype("timedelta64[us]") + + expected = tm.box_expected(expected, box, transpose=False) + + result = obj * scalar_td + tm.assert_equal(result, expected) + + result = scalar_td * obj + tm.assert_equal(result, expected) + + def test_numeric_arr_rdiv_tdscalar(self, three_days, numeric_idx, box_with_array): + box = box_with_array + + index = numeric_idx[1:3] + + expected = TimedeltaIndex(["3 Days", "36 Hours"]) + if isinstance(three_days, np.timedelta64): + dtype = three_days.dtype + if dtype < np.dtype("m8[s]"): + # i.e. resolution is lower -> use lowest supported resolution + dtype = np.dtype("m8[s]") + expected = expected.astype(dtype) + elif type(three_days) is timedelta: + expected = expected.astype("m8[us]") + elif isinstance( + three_days, + (pd.offsets.Day, pd.offsets.Hour, pd.offsets.Minute, pd.offsets.Second), + ): + # closest reso is Second + expected = expected.astype("m8[s]") + + index = tm.box_expected(index, box) + expected = tm.box_expected(expected, box) + + result = three_days / index + tm.assert_equal(result, expected) + + msg = "cannot use operands with types dtype" + with pytest.raises(TypeError, match=msg): + index / three_days + + @pytest.mark.parametrize( + "other", + [ + Timedelta(hours=31), + Timedelta(hours=31).to_pytimedelta(), + Timedelta(hours=31).to_timedelta64(), + Timedelta(hours=31).to_timedelta64().astype("m8[h]"), + np.timedelta64("NaT"), + np.timedelta64("NaT", "D"), + pd.offsets.Minute(3), + pd.offsets.Second(0), + # GH#28080 numeric+datetimelike should raise; Timestamp used + # to raise NullFrequencyError but that behavior was removed in 1.0 + pd.Timestamp("2021-01-01", tz="Asia/Tokyo"), + pd.Timestamp("2021-01-01"), + pd.Timestamp("2021-01-01").to_pydatetime(), + pd.Timestamp("2021-01-01", tz="UTC").to_pydatetime(), + pd.Timestamp("2021-01-01").to_datetime64(), + np.datetime64("NaT", "ns"), + pd.NaT, + ], + ids=repr, + ) + def test_add_sub_datetimedeltalike_invalid( + self, numeric_idx, other, box_with_array + ): + box = box_with_array + + left = tm.box_expected(numeric_idx, box) + msg = "|".join( + [ + "unsupported operand type", + "Addition/subtraction of integers and integer-arrays", + "Instead of adding/subtracting", + "cannot use operands with types dtype", + "Concatenation operation is not implemented for NumPy arrays", + "Cannot (add|subtract) NaT (to|from) ndarray", + # pd.array vs np.datetime64 case + r"operand type\(s\) all returned NotImplemented from __array_ufunc__", + "can only perform ops with numeric values", + "cannot subtract DatetimeArray from ndarray", + # pd.Timedelta(1) + Index([0, 1, 2]) + "Cannot add or subtract Timedelta from integers", + ] + ) + assert_invalid_addsub_type(left, other, msg) + + +# ------------------------------------------------------------------ +# Arithmetic + + +class TestDivisionByZero: + def test_div_zero(self, zero, numeric_idx): + idx = numeric_idx + + expected = Index([np.nan, np.inf, np.inf, np.inf, np.inf], dtype=np.float64) + # We only adjust for Index, because Series does not yet apply + # the adjustment correctly. + expected2 = adjust_negative_zero(zero, expected) + + result = idx / zero + tm.assert_index_equal(result, expected2) + ser_compat = Series(idx).astype("i8") / np.array(zero).astype("i8") + tm.assert_series_equal(ser_compat, Series(expected)) + + def test_floordiv_zero(self, zero, numeric_idx): + idx = numeric_idx + + expected = Index([np.nan, np.inf, np.inf, np.inf, np.inf], dtype=np.float64) + # We only adjust for Index, because Series does not yet apply + # the adjustment correctly. + expected2 = adjust_negative_zero(zero, expected) + + result = idx // zero + tm.assert_index_equal(result, expected2) + ser_compat = Series(idx).astype("i8") // np.array(zero).astype("i8") + tm.assert_series_equal(ser_compat, Series(expected)) + + def test_mod_zero(self, zero, numeric_idx): + idx = numeric_idx + + expected = Index([np.nan, np.nan, np.nan, np.nan, np.nan], dtype=np.float64) + result = idx % zero + tm.assert_index_equal(result, expected) + ser_compat = Series(idx).astype("i8") % np.array(zero).astype("i8") + tm.assert_series_equal(ser_compat, Series(result)) + + def test_divmod_zero(self, zero, numeric_idx): + idx = numeric_idx + + exleft = Index([np.nan, np.inf, np.inf, np.inf, np.inf], dtype=np.float64) + exright = Index([np.nan, np.nan, np.nan, np.nan, np.nan], dtype=np.float64) + exleft = adjust_negative_zero(zero, exleft) + + result = divmod(idx, zero) + tm.assert_index_equal(result[0], exleft) + tm.assert_index_equal(result[1], exright) + + @pytest.mark.parametrize("op", [operator.truediv, operator.floordiv]) + def test_div_negative_zero(self, zero, numeric_idx, op): + # Check that -1 / -0.0 returns np.inf, not -np.inf + if numeric_idx.dtype == np.uint64: + pytest.skip(f"Div by negative 0 not relevant for {numeric_idx.dtype}") + idx = numeric_idx - 3 + + expected = Index([-np.inf, -np.inf, -np.inf, np.nan, np.inf], dtype=np.float64) + expected = adjust_negative_zero(zero, expected) + + result = op(idx, zero) + tm.assert_index_equal(result, expected) + + # ------------------------------------------------------------------ + + @pytest.mark.parametrize("dtype1", [np.int64, np.float64, np.uint64]) + def test_ser_div_ser( + self, + switch_numexpr_min_elements, + dtype1, + any_real_numpy_dtype, + ): + # no longer do integer div for any ops, but deal with the 0's + dtype2 = any_real_numpy_dtype + + first = Series([3, 4, 5, 8], name="first").astype(dtype1) + second = Series([0, 0, 0, 3], name="second").astype(dtype2) + + with np.errstate(all="ignore"): + expected = Series( + first.values.astype(np.float64) / second.values, + dtype="float64", + name=None, + ) + expected.iloc[0:3] = np.inf + if first.dtype == "int64" and second.dtype == "float32": + # when using numexpr, the casting rules are slightly different + # and int64/float32 combo results in float32 instead of float64 + if expr.USE_NUMEXPR and switch_numexpr_min_elements == 0: + expected = expected.astype("float32") + + result = first / second + tm.assert_series_equal(result, expected) + assert not result.equals(second / first) + + @pytest.mark.parametrize("dtype1", [np.int64, np.float64, np.uint64]) + def test_ser_divmod_zero(self, dtype1, any_real_numpy_dtype): + # GH#26987 + dtype2 = any_real_numpy_dtype + left = Series([1, 1]).astype(dtype1) + right = Series([0, 2]).astype(dtype2) + + # GH#27321 pandas convention is to set 1 // 0 to np.inf, as opposed + # to numpy which sets to np.nan; patch `expected[0]` below + expected = left // right, left % right + expected = list(expected) + expected[0] = expected[0].astype(np.float64) + expected[0][0] = np.inf + result = divmod(left, right) + + tm.assert_series_equal(result[0], expected[0]) + tm.assert_series_equal(result[1], expected[1]) + + # rdivmod case + result = divmod(left.values, right) + tm.assert_series_equal(result[0], expected[0]) + tm.assert_series_equal(result[1], expected[1]) + + def test_ser_divmod_inf(self): + left = Series([np.inf, 1.0]) + right = Series([np.inf, 2.0]) + + expected = left // right, left % right + result = divmod(left, right) + + tm.assert_series_equal(result[0], expected[0]) + tm.assert_series_equal(result[1], expected[1]) + + # rdivmod case + result = divmod(left.values, right) + tm.assert_series_equal(result[0], expected[0]) + tm.assert_series_equal(result[1], expected[1]) + + def test_rdiv_zero_compat(self): + # GH#8674 + zero_array = np.array([0] * 5) + data = np.random.default_rng(2).standard_normal(5) + expected = Series([0.0] * 5) + + result = zero_array / Series(data) + tm.assert_series_equal(result, expected) + + result = Series(zero_array) / data + tm.assert_series_equal(result, expected) + + result = Series(zero_array) / Series(data) + tm.assert_series_equal(result, expected) + + def test_div_zero_inf_signs(self): + # GH#9144, inf signing + ser = Series([-1, 0, 1], name="first") + expected = Series([-np.inf, np.nan, np.inf], name="first") + + result = ser / 0 + tm.assert_series_equal(result, expected) + + def test_rdiv_zero(self): + # GH#9144 + ser = Series([-1, 0, 1], name="first") + expected = Series([0.0, np.nan, 0.0], name="first") + + result = 0 / ser + tm.assert_series_equal(result, expected) + + def test_floordiv_div(self): + # GH#9144 + ser = Series([-1, 0, 1], name="first") + + result = ser // 0 + expected = Series([-np.inf, np.nan, np.inf], name="first") + tm.assert_series_equal(result, expected) + + def test_df_div_zero_df(self): + # integer div, but deal with the 0's (GH#9144) + df = pd.DataFrame({"first": [3, 4, 5, 8], "second": [0, 0, 0, 3]}) + result = df / df + + first = Series([1.0, 1.0, 1.0, 1.0]) + second = Series([np.nan, np.nan, np.nan, 1]) + expected = pd.DataFrame({"first": first, "second": second}) + tm.assert_frame_equal(result, expected) + + def test_df_div_zero_array(self): + # integer div, but deal with the 0's (GH#9144) + df = pd.DataFrame({"first": [3, 4, 5, 8], "second": [0, 0, 0, 3]}) + + first = Series([1.0, 1.0, 1.0, 1.0]) + second = Series([np.nan, np.nan, np.nan, 1]) + expected = pd.DataFrame({"first": first, "second": second}) + + with np.errstate(all="ignore"): + arr = df.values.astype("float") / df.values + result = pd.DataFrame(arr, index=df.index, columns=df.columns) + tm.assert_frame_equal(result, expected) + + def test_df_div_zero_int(self): + # integer div, but deal with the 0's (GH#9144) + df = pd.DataFrame({"first": [3, 4, 5, 8], "second": [0, 0, 0, 3]}) + + result = df / 0 + expected = pd.DataFrame(np.inf, index=df.index, columns=df.columns) + expected.iloc[0:3, 1] = np.nan + tm.assert_frame_equal(result, expected) + + # numpy has a slightly different (wrong) treatment + with np.errstate(all="ignore"): + arr = df.values.astype("float64") / 0 + result2 = pd.DataFrame(arr, index=df.index, columns=df.columns) + tm.assert_frame_equal(result2, expected) + + def test_df_div_zero_series_does_not_commute(self): + # integer div, but deal with the 0's (GH#9144) + df = pd.DataFrame(np.random.default_rng(2).standard_normal((10, 5))) + ser = df[0] + res = ser / df + res2 = df / ser + assert not res.fillna(0).equals(res2.fillna(0)) + + # ------------------------------------------------------------------ + # Mod By Zero + + def test_df_mod_zero_df(self, using_array_manager): + # GH#3590, modulo as ints + df = pd.DataFrame({"first": [3, 4, 5, 8], "second": [0, 0, 0, 3]}) + # this is technically wrong, as the integer portion is coerced to float + first = Series([0, 0, 0, 0]) + if not using_array_manager: + # INFO(ArrayManager) BlockManager doesn't preserve dtype per column + # while ArrayManager performs op column-wisedoes and thus preserves + # dtype if possible + first = first.astype("float64") + second = Series([np.nan, np.nan, np.nan, 0]) + expected = pd.DataFrame({"first": first, "second": second}) + result = df % df + tm.assert_frame_equal(result, expected) + + # GH#38939 If we dont pass copy=False, df is consolidated and + # result["first"] is float64 instead of int64 + df = pd.DataFrame({"first": [3, 4, 5, 8], "second": [0, 0, 0, 3]}, copy=False) + first = Series([0, 0, 0, 0], dtype="int64") + second = Series([np.nan, np.nan, np.nan, 0]) + expected = pd.DataFrame({"first": first, "second": second}) + result = df % df + tm.assert_frame_equal(result, expected) + + def test_df_mod_zero_array(self): + # GH#3590, modulo as ints + df = pd.DataFrame({"first": [3, 4, 5, 8], "second": [0, 0, 0, 3]}) + + # this is technically wrong, as the integer portion is coerced to float + # ### + first = Series([0, 0, 0, 0], dtype="float64") + second = Series([np.nan, np.nan, np.nan, 0]) + expected = pd.DataFrame({"first": first, "second": second}) + + # numpy has a slightly different (wrong) treatment + with np.errstate(all="ignore"): + arr = df.values % df.values + result2 = pd.DataFrame(arr, index=df.index, columns=df.columns, dtype="float64") + result2.iloc[0:3, 1] = np.nan + tm.assert_frame_equal(result2, expected) + + def test_df_mod_zero_int(self): + # GH#3590, modulo as ints + df = pd.DataFrame({"first": [3, 4, 5, 8], "second": [0, 0, 0, 3]}) + + result = df % 0 + expected = pd.DataFrame(np.nan, index=df.index, columns=df.columns) + tm.assert_frame_equal(result, expected) + + # numpy has a slightly different (wrong) treatment + with np.errstate(all="ignore"): + arr = df.values.astype("float64") % 0 + result2 = pd.DataFrame(arr, index=df.index, columns=df.columns) + tm.assert_frame_equal(result2, expected) + + def test_df_mod_zero_series_does_not_commute(self): + # GH#3590, modulo as ints + # not commutative with series + df = pd.DataFrame(np.random.default_rng(2).standard_normal((10, 5))) + ser = df[0] + res = ser % df + res2 = df % ser + assert not res.fillna(0).equals(res2.fillna(0)) + + +class TestMultiplicationDivision: + # __mul__, __rmul__, __div__, __rdiv__, __floordiv__, __rfloordiv__ + # for non-timestamp/timedelta/period dtypes + + def test_divide_decimal(self, box_with_array): + # resolves issue GH#9787 + box = box_with_array + ser = Series([Decimal(10)]) + expected = Series([Decimal(5)]) + + ser = tm.box_expected(ser, box) + expected = tm.box_expected(expected, box) + + result = ser / Decimal(2) + + tm.assert_equal(result, expected) + + result = ser // Decimal(2) + tm.assert_equal(result, expected) + + def test_div_equiv_binop(self): + # Test Series.div as well as Series.__div__ + # float/integer issue + # GH#7785 + first = Series([1, 0], name="first") + second = Series([-0.01, -0.02], name="second") + expected = Series([-0.01, -np.inf]) + + result = second.div(first) + tm.assert_series_equal(result, expected, check_names=False) + + result = second / first + tm.assert_series_equal(result, expected) + + def test_div_int(self, numeric_idx): + idx = numeric_idx + result = idx / 1 + expected = idx.astype("float64") + tm.assert_index_equal(result, expected) + + result = idx / 2 + expected = Index(idx.values / 2) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("op", [operator.mul, ops.rmul, operator.floordiv]) + def test_mul_int_identity(self, op, numeric_idx, box_with_array): + idx = numeric_idx + idx = tm.box_expected(idx, box_with_array) + + result = op(idx, 1) + tm.assert_equal(result, idx) + + def test_mul_int_array(self, numeric_idx): + idx = numeric_idx + didx = idx * idx + + result = idx * np.array(5, dtype="int64") + tm.assert_index_equal(result, idx * 5) + + arr_dtype = "uint64" if idx.dtype == np.uint64 else "int64" + result = idx * np.arange(5, dtype=arr_dtype) + tm.assert_index_equal(result, didx) + + def test_mul_int_series(self, numeric_idx): + idx = numeric_idx + didx = idx * idx + + arr_dtype = "uint64" if idx.dtype == np.uint64 else "int64" + result = idx * Series(np.arange(5, dtype=arr_dtype)) + tm.assert_series_equal(result, Series(didx)) + + def test_mul_float_series(self, numeric_idx): + idx = numeric_idx + rng5 = np.arange(5, dtype="float64") + + result = idx * Series(rng5 + 0.1) + expected = Series(rng5 * (rng5 + 0.1)) + tm.assert_series_equal(result, expected) + + def test_mul_index(self, numeric_idx): + idx = numeric_idx + + result = idx * idx + tm.assert_index_equal(result, idx**2) + + def test_mul_datelike_raises(self, numeric_idx): + idx = numeric_idx + msg = "cannot perform __rmul__ with this index type" + with pytest.raises(TypeError, match=msg): + idx * date_range("20130101", periods=5) + + def test_mul_size_mismatch_raises(self, numeric_idx): + idx = numeric_idx + msg = "operands could not be broadcast together" + with pytest.raises(ValueError, match=msg): + idx * idx[0:3] + with pytest.raises(ValueError, match=msg): + idx * np.array([1, 2]) + + @pytest.mark.parametrize("op", [operator.pow, ops.rpow]) + def test_pow_float(self, op, numeric_idx, box_with_array): + # test power calculations both ways, GH#14973 + box = box_with_array + idx = numeric_idx + expected = Index(op(idx.values, 2.0)) + + idx = tm.box_expected(idx, box) + expected = tm.box_expected(expected, box) + + result = op(idx, 2.0) + tm.assert_equal(result, expected) + + def test_modulo(self, numeric_idx, box_with_array): + # GH#9244 + box = box_with_array + idx = numeric_idx + expected = Index(idx.values % 2) + + idx = tm.box_expected(idx, box) + expected = tm.box_expected(expected, box) + + result = idx % 2 + tm.assert_equal(result, expected) + + def test_divmod_scalar(self, numeric_idx): + idx = numeric_idx + + result = divmod(idx, 2) + with np.errstate(all="ignore"): + div, mod = divmod(idx.values, 2) + + expected = Index(div), Index(mod) + for r, e in zip(result, expected): + tm.assert_index_equal(r, e) + + def test_divmod_ndarray(self, numeric_idx): + idx = numeric_idx + other = np.ones(idx.values.shape, dtype=idx.values.dtype) * 2 + + result = divmod(idx, other) + with np.errstate(all="ignore"): + div, mod = divmod(idx.values, other) + + expected = Index(div), Index(mod) + for r, e in zip(result, expected): + tm.assert_index_equal(r, e) + + def test_divmod_series(self, numeric_idx): + idx = numeric_idx + other = np.ones(idx.values.shape, dtype=idx.values.dtype) * 2 + + result = divmod(idx, Series(other)) + with np.errstate(all="ignore"): + div, mod = divmod(idx.values, other) + + expected = Series(div), Series(mod) + for r, e in zip(result, expected): + tm.assert_series_equal(r, e) + + @pytest.mark.parametrize("other", [np.nan, 7, -23, 2.718, -3.14, np.inf]) + def test_ops_np_scalar(self, other): + vals = np.random.default_rng(2).standard_normal((5, 3)) + f = lambda x: pd.DataFrame( + x, index=list("ABCDE"), columns=["jim", "joe", "jolie"] + ) + + df = f(vals) + + tm.assert_frame_equal(df / np.array(other), f(vals / other)) + tm.assert_frame_equal(np.array(other) * df, f(vals * other)) + tm.assert_frame_equal(df + np.array(other), f(vals + other)) + tm.assert_frame_equal(np.array(other) - df, f(other - vals)) + + # TODO: This came from series.test.test_operators, needs cleanup + def test_operators_frame(self): + # rpow does not work with DataFrame + ts = Series( + np.arange(10, dtype=np.float64), + index=date_range("2020-01-01", periods=10), + name="ts", + ) + ts.name = "ts" + + df = pd.DataFrame({"A": ts}) + + tm.assert_series_equal(ts + ts, ts + df["A"], check_names=False) + tm.assert_series_equal(ts**ts, ts ** df["A"], check_names=False) + tm.assert_series_equal(ts < ts, ts < df["A"], check_names=False) + tm.assert_series_equal(ts / ts, ts / df["A"], check_names=False) + + # TODO: this came from tests.series.test_analytics, needs cleanup and + # de-duplication with test_modulo above + def test_modulo2(self): + with np.errstate(all="ignore"): + # GH#3590, modulo as ints + p = pd.DataFrame({"first": [3, 4, 5, 8], "second": [0, 0, 0, 3]}) + result = p["first"] % p["second"] + expected = Series(p["first"].values % p["second"].values, dtype="float64") + expected.iloc[0:3] = np.nan + tm.assert_series_equal(result, expected) + + result = p["first"] % 0 + expected = Series(np.nan, index=p.index, name="first") + tm.assert_series_equal(result, expected) + + p = p.astype("float64") + result = p["first"] % p["second"] + expected = Series(p["first"].values % p["second"].values) + tm.assert_series_equal(result, expected) + + p = p.astype("float64") + result = p["first"] % p["second"] + result2 = p["second"] % p["first"] + assert not result.equals(result2) + + def test_modulo_zero_int(self): + # GH#9144 + with np.errstate(all="ignore"): + s = Series([0, 1]) + + result = s % 0 + expected = Series([np.nan, np.nan]) + tm.assert_series_equal(result, expected) + + result = 0 % s + expected = Series([np.nan, 0.0]) + tm.assert_series_equal(result, expected) + + +class TestAdditionSubtraction: + # __add__, __sub__, __radd__, __rsub__, __iadd__, __isub__ + # for non-timestamp/timedelta/period dtypes + + @pytest.mark.parametrize( + "first, second, expected", + [ + ( + Series([1, 2, 3], index=list("ABC"), name="x"), + Series([2, 2, 2], index=list("ABD"), name="x"), + Series([3.0, 4.0, np.nan, np.nan], index=list("ABCD"), name="x"), + ), + ( + Series([1, 2, 3], index=list("ABC"), name="x"), + Series([2, 2, 2, 2], index=list("ABCD"), name="x"), + Series([3, 4, 5, np.nan], index=list("ABCD"), name="x"), + ), + ], + ) + def test_add_series(self, first, second, expected): + # GH#1134 + tm.assert_series_equal(first + second, expected) + tm.assert_series_equal(second + first, expected) + + @pytest.mark.parametrize( + "first, second, expected", + [ + ( + pd.DataFrame({"x": [1, 2, 3]}, index=list("ABC")), + pd.DataFrame({"x": [2, 2, 2]}, index=list("ABD")), + pd.DataFrame({"x": [3.0, 4.0, np.nan, np.nan]}, index=list("ABCD")), + ), + ( + pd.DataFrame({"x": [1, 2, 3]}, index=list("ABC")), + pd.DataFrame({"x": [2, 2, 2, 2]}, index=list("ABCD")), + pd.DataFrame({"x": [3, 4, 5, np.nan]}, index=list("ABCD")), + ), + ], + ) + def test_add_frames(self, first, second, expected): + # GH#1134 + tm.assert_frame_equal(first + second, expected) + tm.assert_frame_equal(second + first, expected) + + # TODO: This came from series.test.test_operators, needs cleanup + def test_series_frame_radd_bug(self, fixed_now_ts): + # GH#353 + vals = Series([str(i) for i in range(5)]) + result = "foo_" + vals + expected = vals.map(lambda x: "foo_" + x) + tm.assert_series_equal(result, expected) + + frame = pd.DataFrame({"vals": vals}) + result = "foo_" + frame + expected = pd.DataFrame({"vals": vals.map(lambda x: "foo_" + x)}) + tm.assert_frame_equal(result, expected) + + ts = Series( + np.arange(10, dtype=np.float64), + index=date_range("2020-01-01", periods=10), + name="ts", + ) + + # really raise this time + fix_now = fixed_now_ts.to_pydatetime() + msg = "|".join( + [ + "unsupported operand type", + # wrong error message, see https://github.com/numpy/numpy/issues/18832 + "Concatenation operation", + ] + ) + with pytest.raises(TypeError, match=msg): + fix_now + ts + + with pytest.raises(TypeError, match=msg): + ts + fix_now + + # TODO: This came from series.test.test_operators, needs cleanup + def test_datetime64_with_index(self): + # arithmetic integer ops with an index + ser = Series(np.random.default_rng(2).standard_normal(5)) + expected = ser - ser.index.to_series() + result = ser - ser.index + tm.assert_series_equal(result, expected) + + # GH#4629 + # arithmetic datetime64 ops with an index + ser = Series( + date_range("20130101", periods=5), + index=date_range("20130101", periods=5), + ) + expected = ser - ser.index.to_series() + result = ser - ser.index + tm.assert_series_equal(result, expected) + + msg = "cannot subtract PeriodArray from DatetimeArray" + with pytest.raises(TypeError, match=msg): + # GH#18850 + result = ser - ser.index.to_period() + + df = pd.DataFrame( + np.random.default_rng(2).standard_normal((5, 2)), + index=date_range("20130101", periods=5), + ) + df["date"] = pd.Timestamp("20130102") + df["expected"] = df["date"] - df.index.to_series() + df["result"] = df["date"] - df.index + tm.assert_series_equal(df["result"], df["expected"], check_names=False) + + # TODO: taken from tests.frame.test_operators, needs cleanup + def test_frame_operators(self, float_frame): + frame = float_frame + + garbage = np.random.default_rng(2).random(4) + colSeries = Series(garbage, index=np.array(frame.columns)) + + idSum = frame + frame + seriesSum = frame + colSeries + + for col, series in idSum.items(): + for idx, val in series.items(): + origVal = frame[col][idx] * 2 + if not np.isnan(val): + assert val == origVal + else: + assert np.isnan(origVal) + + for col, series in seriesSum.items(): + for idx, val in series.items(): + origVal = frame[col][idx] + colSeries[col] + if not np.isnan(val): + assert val == origVal + else: + assert np.isnan(origVal) + + def test_frame_operators_col_align(self, float_frame): + frame2 = pd.DataFrame(float_frame, columns=["D", "C", "B", "A"]) + added = frame2 + frame2 + expected = frame2 * 2 + tm.assert_frame_equal(added, expected) + + def test_frame_operators_none_to_nan(self): + df = pd.DataFrame({"a": ["a", None, "b"]}) + tm.assert_frame_equal(df + df, pd.DataFrame({"a": ["aa", np.nan, "bb"]})) + + @pytest.mark.parametrize("dtype", ("float", "int64")) + def test_frame_operators_empty_like(self, dtype): + # Test for issue #10181 + frames = [ + pd.DataFrame(dtype=dtype), + pd.DataFrame(columns=["A"], dtype=dtype), + pd.DataFrame(index=[0], dtype=dtype), + ] + for df in frames: + assert (df + df).equals(df) + tm.assert_frame_equal(df + df, df) + + @pytest.mark.parametrize( + "func", + [lambda x: x * 2, lambda x: x[::2], lambda x: 5], + ids=["multiply", "slice", "constant"], + ) + def test_series_operators_arithmetic(self, all_arithmetic_functions, func): + op = all_arithmetic_functions + series = Series( + np.arange(10, dtype=np.float64), + index=date_range("2020-01-01", periods=10), + name="ts", + ) + other = func(series) + compare_op(series, other, op) + + @pytest.mark.parametrize( + "func", [lambda x: x + 1, lambda x: 5], ids=["add", "constant"] + ) + def test_series_operators_compare(self, comparison_op, func): + op = comparison_op + series = Series( + np.arange(10, dtype=np.float64), + index=date_range("2020-01-01", periods=10), + name="ts", + ) + other = func(series) + compare_op(series, other, op) + + @pytest.mark.parametrize( + "func", + [lambda x: x * 2, lambda x: x[::2], lambda x: 5], + ids=["multiply", "slice", "constant"], + ) + def test_divmod(self, func): + series = Series( + np.arange(10, dtype=np.float64), + index=date_range("2020-01-01", periods=10), + name="ts", + ) + other = func(series) + results = divmod(series, other) + if isinstance(other, abc.Iterable) and len(series) != len(other): + # if the lengths don't match, this is the test where we use + # `tser[::2]`. Pad every other value in `other_np` with nan. + other_np = [] + for n in other: + other_np.append(n) + other_np.append(np.nan) + else: + other_np = other + other_np = np.asarray(other_np) + with np.errstate(all="ignore"): + expecteds = divmod(series.values, np.asarray(other_np)) + + for result, expected in zip(results, expecteds): + # check the values, name, and index separately + tm.assert_almost_equal(np.asarray(result), expected) + + assert result.name == series.name + tm.assert_index_equal(result.index, series.index._with_freq(None)) + + def test_series_divmod_zero(self): + # Check that divmod uses pandas convention for division by zero, + # which does not match numpy. + # pandas convention has + # 1/0 == np.inf + # -1/0 == -np.inf + # 1/-0.0 == -np.inf + # -1/-0.0 == np.inf + tser = Series( + np.arange(1, 11, dtype=np.float64), + index=date_range("2020-01-01", periods=10), + name="ts", + ) + other = tser * 0 + + result = divmod(tser, other) + exp1 = Series([np.inf] * len(tser), index=tser.index, name="ts") + exp2 = Series([np.nan] * len(tser), index=tser.index, name="ts") + tm.assert_series_equal(result[0], exp1) + tm.assert_series_equal(result[1], exp2) + + +class TestUFuncCompat: + # TODO: add more dtypes + @pytest.mark.parametrize("holder", [Index, RangeIndex, Series]) + @pytest.mark.parametrize("dtype", [np.int64, np.uint64, np.float64]) + def test_ufunc_compat(self, holder, dtype): + box = Series if holder is Series else Index + + if holder is RangeIndex: + if dtype != np.int64: + pytest.skip(f"dtype {dtype} not relevant for RangeIndex") + idx = RangeIndex(0, 5, name="foo") + else: + idx = holder(np.arange(5, dtype=dtype), name="foo") + result = np.sin(idx) + expected = box(np.sin(np.arange(5, dtype=dtype)), name="foo") + tm.assert_equal(result, expected) + + # TODO: add more dtypes + @pytest.mark.parametrize("holder", [Index, Series]) + @pytest.mark.parametrize("dtype", [np.int64, np.uint64, np.float64]) + def test_ufunc_coercions(self, holder, dtype): + idx = holder([1, 2, 3, 4, 5], dtype=dtype, name="x") + box = Series if holder is Series else Index + + result = np.sqrt(idx) + assert result.dtype == "f8" and isinstance(result, box) + exp = Index(np.sqrt(np.array([1, 2, 3, 4, 5], dtype=np.float64)), name="x") + exp = tm.box_expected(exp, box) + tm.assert_equal(result, exp) + + result = np.divide(idx, 2.0) + assert result.dtype == "f8" and isinstance(result, box) + exp = Index([0.5, 1.0, 1.5, 2.0, 2.5], dtype=np.float64, name="x") + exp = tm.box_expected(exp, box) + tm.assert_equal(result, exp) + + # _evaluate_numeric_binop + result = idx + 2.0 + assert result.dtype == "f8" and isinstance(result, box) + exp = Index([3.0, 4.0, 5.0, 6.0, 7.0], dtype=np.float64, name="x") + exp = tm.box_expected(exp, box) + tm.assert_equal(result, exp) + + result = idx - 2.0 + assert result.dtype == "f8" and isinstance(result, box) + exp = Index([-1.0, 0.0, 1.0, 2.0, 3.0], dtype=np.float64, name="x") + exp = tm.box_expected(exp, box) + tm.assert_equal(result, exp) + + result = idx * 1.0 + assert result.dtype == "f8" and isinstance(result, box) + exp = Index([1.0, 2.0, 3.0, 4.0, 5.0], dtype=np.float64, name="x") + exp = tm.box_expected(exp, box) + tm.assert_equal(result, exp) + + result = idx / 2.0 + assert result.dtype == "f8" and isinstance(result, box) + exp = Index([0.5, 1.0, 1.5, 2.0, 2.5], dtype=np.float64, name="x") + exp = tm.box_expected(exp, box) + tm.assert_equal(result, exp) + + # TODO: add more dtypes + @pytest.mark.parametrize("holder", [Index, Series]) + @pytest.mark.parametrize("dtype", [np.int64, np.uint64, np.float64]) + def test_ufunc_multiple_return_values(self, holder, dtype): + obj = holder([1, 2, 3], dtype=dtype, name="x") + box = Series if holder is Series else Index + + result = np.modf(obj) + assert isinstance(result, tuple) + exp1 = Index([0.0, 0.0, 0.0], dtype=np.float64, name="x") + exp2 = Index([1.0, 2.0, 3.0], dtype=np.float64, name="x") + tm.assert_equal(result[0], tm.box_expected(exp1, box)) + tm.assert_equal(result[1], tm.box_expected(exp2, box)) + + def test_ufunc_at(self): + s = Series([0, 1, 2], index=[1, 2, 3], name="x") + np.add.at(s, [0, 2], 10) + expected = Series([10, 1, 12], index=[1, 2, 3], name="x") + tm.assert_series_equal(s, expected) + + +class TestObjectDtypeEquivalence: + # Tests that arithmetic operations match operations executed elementwise + + @pytest.mark.parametrize("dtype", [None, object]) + def test_numarr_with_dtype_add_nan(self, dtype, box_with_array): + box = box_with_array + ser = Series([1, 2, 3], dtype=dtype) + expected = Series([np.nan, np.nan, np.nan], dtype=dtype) + + ser = tm.box_expected(ser, box) + expected = tm.box_expected(expected, box) + + result = np.nan + ser + tm.assert_equal(result, expected) + + result = ser + np.nan + tm.assert_equal(result, expected) + + @pytest.mark.parametrize("dtype", [None, object]) + def test_numarr_with_dtype_add_int(self, dtype, box_with_array): + box = box_with_array + ser = Series([1, 2, 3], dtype=dtype) + expected = Series([2, 3, 4], dtype=dtype) + + ser = tm.box_expected(ser, box) + expected = tm.box_expected(expected, box) + + result = 1 + ser + tm.assert_equal(result, expected) + + result = ser + 1 + tm.assert_equal(result, expected) + + # TODO: moved from tests.series.test_operators; needs cleanup + @pytest.mark.parametrize( + "op", + [operator.add, operator.sub, operator.mul, operator.truediv, operator.floordiv], + ) + def test_operators_reverse_object(self, op): + # GH#56 + arr = Series( + np.random.default_rng(2).standard_normal(10), + index=np.arange(10), + dtype=object, + ) + + result = op(1.0, arr) + expected = op(1.0, arr.astype(float)) + tm.assert_series_equal(result.astype(float), expected) + + +class TestNumericArithmeticUnsorted: + # Tests in this class have been moved from type-specific test modules + # but not yet sorted, parametrized, and de-duplicated + @pytest.mark.parametrize( + "op", + [ + operator.add, + operator.sub, + operator.mul, + operator.floordiv, + operator.truediv, + ], + ) + @pytest.mark.parametrize( + "idx1", + [ + RangeIndex(0, 10, 1), + RangeIndex(0, 20, 2), + RangeIndex(-10, 10, 2), + RangeIndex(5, -5, -1), + ], + ) + @pytest.mark.parametrize( + "idx2", + [ + RangeIndex(0, 10, 1), + RangeIndex(0, 20, 2), + RangeIndex(-10, 10, 2), + RangeIndex(5, -5, -1), + ], + ) + def test_binops_index(self, op, idx1, idx2): + idx1 = idx1._rename("foo") + idx2 = idx2._rename("bar") + result = op(idx1, idx2) + expected = op(Index(idx1.to_numpy()), Index(idx2.to_numpy())) + tm.assert_index_equal(result, expected, exact="equiv") + + @pytest.mark.parametrize( + "op", + [ + operator.add, + operator.sub, + operator.mul, + operator.floordiv, + operator.truediv, + ], + ) + @pytest.mark.parametrize( + "idx", + [ + RangeIndex(0, 10, 1), + RangeIndex(0, 20, 2), + RangeIndex(-10, 10, 2), + RangeIndex(5, -5, -1), + ], + ) + @pytest.mark.parametrize("scalar", [-1, 1, 2]) + def test_binops_index_scalar(self, op, idx, scalar): + result = op(idx, scalar) + expected = op(Index(idx.to_numpy()), scalar) + tm.assert_index_equal(result, expected, exact="equiv") + + @pytest.mark.parametrize("idx1", [RangeIndex(0, 10, 1), RangeIndex(0, 20, 2)]) + @pytest.mark.parametrize("idx2", [RangeIndex(0, 10, 1), RangeIndex(0, 20, 2)]) + def test_binops_index_pow(self, idx1, idx2): + # numpy does not allow powers of negative integers so test separately + # https://github.com/numpy/numpy/pull/8127 + idx1 = idx1._rename("foo") + idx2 = idx2._rename("bar") + result = pow(idx1, idx2) + expected = pow(Index(idx1.to_numpy()), Index(idx2.to_numpy())) + tm.assert_index_equal(result, expected, exact="equiv") + + @pytest.mark.parametrize("idx", [RangeIndex(0, 10, 1), RangeIndex(0, 20, 2)]) + @pytest.mark.parametrize("scalar", [1, 2]) + def test_binops_index_scalar_pow(self, idx, scalar): + # numpy does not allow powers of negative integers so test separately + # https://github.com/numpy/numpy/pull/8127 + result = pow(idx, scalar) + expected = pow(Index(idx.to_numpy()), scalar) + tm.assert_index_equal(result, expected, exact="equiv") + + # TODO: divmod? + @pytest.mark.parametrize( + "op", + [ + operator.add, + operator.sub, + operator.mul, + operator.floordiv, + operator.truediv, + operator.pow, + operator.mod, + ], + ) + def test_arithmetic_with_frame_or_series(self, op): + # check that we return NotImplemented when operating with Series + # or DataFrame + index = RangeIndex(5) + other = Series(np.random.default_rng(2).standard_normal(5)) + + expected = op(Series(index), other) + result = op(index, other) + tm.assert_series_equal(result, expected) + + other = pd.DataFrame(np.random.default_rng(2).standard_normal((2, 5))) + expected = op(pd.DataFrame([index, index]), other) + result = op(index, other) + tm.assert_frame_equal(result, expected) + + def test_numeric_compat2(self): + # validate that we are handling the RangeIndex overrides to numeric ops + # and returning RangeIndex where possible + + idx = RangeIndex(0, 10, 2) + + result = idx * 2 + expected = RangeIndex(0, 20, 4) + tm.assert_index_equal(result, expected, exact=True) + + result = idx + 2 + expected = RangeIndex(2, 12, 2) + tm.assert_index_equal(result, expected, exact=True) + + result = idx - 2 + expected = RangeIndex(-2, 8, 2) + tm.assert_index_equal(result, expected, exact=True) + + result = idx / 2 + expected = RangeIndex(0, 5, 1).astype("float64") + tm.assert_index_equal(result, expected, exact=True) + + result = idx / 4 + expected = RangeIndex(0, 10, 2) / 4 + tm.assert_index_equal(result, expected, exact=True) + + result = idx // 1 + expected = idx + tm.assert_index_equal(result, expected, exact=True) + + # __mul__ + result = idx * idx + expected = Index(idx.values * idx.values) + tm.assert_index_equal(result, expected, exact=True) + + # __pow__ + idx = RangeIndex(0, 1000, 2) + result = idx**2 + expected = Index(idx._values) ** 2 + tm.assert_index_equal(Index(result.values), expected, exact=True) + + @pytest.mark.parametrize( + "idx, div, expected", + [ + # TODO: add more dtypes + (RangeIndex(0, 1000, 2), 2, RangeIndex(0, 500, 1)), + (RangeIndex(-99, -201, -3), -3, RangeIndex(33, 67, 1)), + ( + RangeIndex(0, 1000, 1), + 2, + Index(RangeIndex(0, 1000, 1)._values) // 2, + ), + ( + RangeIndex(0, 100, 1), + 2.0, + Index(RangeIndex(0, 100, 1)._values) // 2.0, + ), + (RangeIndex(0), 50, RangeIndex(0)), + (RangeIndex(2, 4, 2), 3, RangeIndex(0, 1, 1)), + (RangeIndex(-5, -10, -6), 4, RangeIndex(-2, -1, 1)), + (RangeIndex(-100, -200, 3), 2, RangeIndex(0)), + ], + ) + def test_numeric_compat2_floordiv(self, idx, div, expected): + # __floordiv__ + tm.assert_index_equal(idx // div, expected, exact=True) + + @pytest.mark.parametrize("dtype", [np.int64, np.float64]) + @pytest.mark.parametrize("delta", [1, 0, -1]) + def test_addsub_arithmetic(self, dtype, delta): + # GH#8142 + delta = dtype(delta) + index = Index([10, 11, 12], dtype=dtype) + result = index + delta + expected = Index(index.values + delta, dtype=dtype) + tm.assert_index_equal(result, expected) + + # this subtraction used to fail + result = index - delta + expected = Index(index.values - delta, dtype=dtype) + tm.assert_index_equal(result, expected) + + tm.assert_index_equal(index + index, 2 * index) + tm.assert_index_equal(index - index, 0 * index) + assert not (index - index).empty + + def test_pow_nan_with_zero(self, box_with_array): + left = Index([np.nan, np.nan, np.nan]) + right = Index([0, 0, 0]) + expected = Index([1.0, 1.0, 1.0]) + + left = tm.box_expected(left, box_with_array) + right = tm.box_expected(right, box_with_array) + expected = tm.box_expected(expected, box_with_array) + + result = left**right + tm.assert_equal(result, expected) + + +def test_fill_value_inf_masking(): + # GH #27464 make sure we mask 0/1 with Inf and not NaN + df = pd.DataFrame({"A": [0, 1, 2], "B": [1.1, None, 1.1]}) + + other = pd.DataFrame({"A": [1.1, 1.2, 1.3]}, index=[0, 2, 3]) + + result = df.rfloordiv(other, fill_value=1) + + expected = pd.DataFrame( + {"A": [np.inf, 1.0, 0.0, 1.0], "B": [0.0, np.nan, 0.0, np.nan]} + ) + tm.assert_frame_equal(result, expected) + + +def test_dataframe_div_silenced(): + # GH#26793 + pdf1 = pd.DataFrame( + { + "A": np.arange(10), + "B": [np.nan, 1, 2, 3, 4] * 2, + "C": [np.nan] * 10, + "D": np.arange(10), + }, + index=list("abcdefghij"), + columns=list("ABCD"), + ) + pdf2 = pd.DataFrame( + np.random.default_rng(2).standard_normal((10, 4)), + index=list("abcdefghjk"), + columns=list("ABCX"), + ) + with tm.assert_produces_warning(None): + pdf1.div(pdf2, fill_value=0) + + +@pytest.mark.parametrize( + "data, expected_data", + [([0, 1, 2], [0, 2, 4])], +) +def test_integer_array_add_list_like( + box_pandas_1d_array, box_1d_array, data, expected_data +): + # GH22606 Verify operators with IntegerArray and list-likes + arr = array(data, dtype="Int64") + container = box_pandas_1d_array(arr) + left = container + box_1d_array(data) + right = box_1d_array(data) + container + + if Series in [box_1d_array, box_pandas_1d_array]: + cls = Series + elif Index in [box_1d_array, box_pandas_1d_array]: + cls = Index + else: + cls = array + + expected = cls(expected_data, dtype="Int64") + + tm.assert_equal(left, expected) + tm.assert_equal(right, expected) + + +def test_sub_multiindex_swapped_levels(): + # GH 9952 + df = pd.DataFrame( + {"a": np.random.default_rng(2).standard_normal(6)}, + index=pd.MultiIndex.from_product( + [["a", "b"], [0, 1, 2]], names=["levA", "levB"] + ), + ) + df2 = df.copy() + df2.index = df2.index.swaplevel(0, 1) + result = df - df2 + expected = pd.DataFrame([0.0] * 6, columns=["a"], index=df.index) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("power", [1, 2, 5]) +@pytest.mark.parametrize("string_size", [0, 1, 2, 5]) +def test_empty_str_comparison(power, string_size): + # GH 37348 + a = np.array(range(10**power)) + right = pd.DataFrame(a, dtype=np.int64) + left = " " * string_size + + result = right == left + expected = pd.DataFrame(np.zeros(right.shape, dtype=bool)) + tm.assert_frame_equal(result, expected) + + +def test_series_add_sub_with_UInt64(): + # GH 22023 + series1 = Series([1, 2, 3]) + series2 = Series([2, 1, 3], dtype="UInt64") + + result = series1 + series2 + expected = Series([3, 3, 6], dtype="Float64") + tm.assert_series_equal(result, expected) + + result = series1 - series2 + expected = Series([-1, 1, 0], dtype="Float64") + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/test_object.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/test_object.py new file mode 100644 index 0000000000000000000000000000000000000000..44e485d40ba536ba08fabb8d2f5aa4e439177010 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/test_object.py @@ -0,0 +1,414 @@ +# Arithmetic tests for DataFrame/Series/Index/Array classes that should +# behave identically. +# Specifically for object dtype +import datetime +from decimal import Decimal +import operator + +import numpy as np +import pytest + +import pandas.util._test_decorators as td + +import pandas as pd +from pandas import ( + Series, + Timestamp, + option_context, +) +import pandas._testing as tm +from pandas.core import ops + +# ------------------------------------------------------------------ +# Comparisons + + +class TestObjectComparisons: + def test_comparison_object_numeric_nas(self, comparison_op): + ser = Series(np.random.default_rng(2).standard_normal(10), dtype=object) + shifted = ser.shift(2) + + func = comparison_op + + result = func(ser, shifted) + expected = func(ser.astype(float), shifted.astype(float)) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize( + "infer_string", [False, pytest.param(True, marks=td.skip_if_no("pyarrow"))] + ) + def test_object_comparisons(self, infer_string): + with option_context("future.infer_string", infer_string): + ser = Series(["a", "b", np.nan, "c", "a"]) + + result = ser == "a" + expected = Series([True, False, False, False, True]) + tm.assert_series_equal(result, expected) + + result = ser < "a" + expected = Series([False, False, False, False, False]) + tm.assert_series_equal(result, expected) + + result = ser != "a" + expected = -(ser == "a") + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("dtype", [None, object]) + def test_more_na_comparisons(self, dtype): + left = Series(["a", np.nan, "c"], dtype=dtype) + right = Series(["a", np.nan, "d"], dtype=dtype) + + result = left == right + expected = Series([True, False, False]) + tm.assert_series_equal(result, expected) + + result = left != right + expected = Series([False, True, True]) + tm.assert_series_equal(result, expected) + + result = left == np.nan + expected = Series([False, False, False]) + tm.assert_series_equal(result, expected) + + result = left != np.nan + expected = Series([True, True, True]) + tm.assert_series_equal(result, expected) + + +# ------------------------------------------------------------------ +# Arithmetic + + +class TestArithmetic: + def test_add_period_to_array_of_offset(self): + # GH#50162 + per = pd.Period("2012-1-1", freq="D") + pi = pd.period_range("2012-1-1", periods=10, freq="D") + idx = per - pi + + expected = pd.Index([x + per for x in idx], dtype=object) + result = idx + per + tm.assert_index_equal(result, expected) + + result = per + idx + tm.assert_index_equal(result, expected) + + # TODO: parametrize + def test_pow_ops_object(self): + # GH#22922 + # pow is weird with masking & 1, so testing here + a = Series([1, np.nan, 1, np.nan], dtype=object) + b = Series([1, np.nan, np.nan, 1], dtype=object) + result = a**b + expected = Series(a.values**b.values, dtype=object) + tm.assert_series_equal(result, expected) + + result = b**a + expected = Series(b.values**a.values, dtype=object) + + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("op", [operator.add, ops.radd]) + @pytest.mark.parametrize("other", ["category", "Int64"]) + def test_add_extension_scalar(self, other, box_with_array, op): + # GH#22378 + # Check that scalars satisfying is_extension_array_dtype(obj) + # do not incorrectly try to dispatch to an ExtensionArray operation + + arr = Series(["a", "b", "c"]) + expected = Series([op(x, other) for x in arr]) + + arr = tm.box_expected(arr, box_with_array) + expected = tm.box_expected(expected, box_with_array) + + result = op(arr, other) + tm.assert_equal(result, expected) + + def test_objarr_add_str(self, box_with_array): + ser = Series(["x", np.nan, "x"]) + expected = Series(["xa", np.nan, "xa"]) + + ser = tm.box_expected(ser, box_with_array) + expected = tm.box_expected(expected, box_with_array) + + result = ser + "a" + tm.assert_equal(result, expected) + + def test_objarr_radd_str(self, box_with_array): + ser = Series(["x", np.nan, "x"]) + expected = Series(["ax", np.nan, "ax"]) + + ser = tm.box_expected(ser, box_with_array) + expected = tm.box_expected(expected, box_with_array) + + result = "a" + ser + tm.assert_equal(result, expected) + + @pytest.mark.parametrize( + "data", + [ + [1, 2, 3], + [1.1, 2.2, 3.3], + [Timestamp("2011-01-01"), Timestamp("2011-01-02"), pd.NaT], + ["x", "y", 1], + ], + ) + @pytest.mark.parametrize("dtype", [None, object]) + def test_objarr_radd_str_invalid(self, dtype, data, box_with_array): + ser = Series(data, dtype=dtype) + + ser = tm.box_expected(ser, box_with_array) + msg = "|".join( + [ + "can only concatenate str", + "did not contain a loop with signature matching types", + "unsupported operand type", + "must be str", + ] + ) + with pytest.raises(TypeError, match=msg): + "foo_" + ser + + @pytest.mark.parametrize("op", [operator.add, ops.radd, operator.sub, ops.rsub]) + def test_objarr_add_invalid(self, op, box_with_array): + # invalid ops + box = box_with_array + + obj_ser = Series(list("abc"), dtype=object, name="objects") + + obj_ser = tm.box_expected(obj_ser, box) + msg = "|".join( + [ + "can only concatenate str", + "unsupported operand type", + "must be str", + "has no kernel", + "operation 'add' not supported", + "operation 'radd' not supported", + "operation 'sub' not supported", + "operation 'rsub' not supported", + ] + ) + with pytest.raises(Exception, match=msg): + op(obj_ser, 1) + with pytest.raises(Exception, match=msg): + op(obj_ser, np.array(1, dtype=np.int64)) + + # TODO: Moved from tests.series.test_operators; needs cleanup + def test_operators_na_handling(self): + ser = Series(["foo", "bar", "baz", np.nan]) + result = "prefix_" + ser + expected = Series(["prefix_foo", "prefix_bar", "prefix_baz", np.nan]) + tm.assert_series_equal(result, expected) + + result = ser + "_suffix" + expected = Series(["foo_suffix", "bar_suffix", "baz_suffix", np.nan]) + tm.assert_series_equal(result, expected) + + # TODO: parametrize over box + @pytest.mark.parametrize("dtype", [None, object]) + def test_series_with_dtype_radd_timedelta(self, dtype): + # note this test is _not_ aimed at timedelta64-dtyped Series + # as of 2.0 we retain object dtype when ser.dtype == object + ser = Series( + [pd.Timedelta("1 days"), pd.Timedelta("2 days"), pd.Timedelta("3 days")], + dtype=dtype, + ) + expected = Series( + [pd.Timedelta("4 days"), pd.Timedelta("5 days"), pd.Timedelta("6 days")], + dtype=dtype, + ) + + result = pd.Timedelta("3 days") + ser + tm.assert_series_equal(result, expected) + + result = ser + pd.Timedelta("3 days") + tm.assert_series_equal(result, expected) + + # TODO: cleanup & parametrize over box + def test_mixed_timezone_series_ops_object(self): + # GH#13043 + ser = Series( + [ + Timestamp("2015-01-01", tz="US/Eastern"), + Timestamp("2015-01-01", tz="Asia/Tokyo"), + ], + name="xxx", + ) + assert ser.dtype == object + + exp = Series( + [ + Timestamp("2015-01-02", tz="US/Eastern"), + Timestamp("2015-01-02", tz="Asia/Tokyo"), + ], + name="xxx", + ) + tm.assert_series_equal(ser + pd.Timedelta("1 days"), exp) + tm.assert_series_equal(pd.Timedelta("1 days") + ser, exp) + + # object series & object series + ser2 = Series( + [ + Timestamp("2015-01-03", tz="US/Eastern"), + Timestamp("2015-01-05", tz="Asia/Tokyo"), + ], + name="xxx", + ) + assert ser2.dtype == object + exp = Series( + [pd.Timedelta("2 days"), pd.Timedelta("4 days")], name="xxx", dtype=object + ) + tm.assert_series_equal(ser2 - ser, exp) + tm.assert_series_equal(ser - ser2, -exp) + + ser = Series( + [pd.Timedelta("01:00:00"), pd.Timedelta("02:00:00")], + name="xxx", + dtype=object, + ) + assert ser.dtype == object + + exp = Series( + [pd.Timedelta("01:30:00"), pd.Timedelta("02:30:00")], + name="xxx", + dtype=object, + ) + tm.assert_series_equal(ser + pd.Timedelta("00:30:00"), exp) + tm.assert_series_equal(pd.Timedelta("00:30:00") + ser, exp) + + # TODO: cleanup & parametrize over box + def test_iadd_preserves_name(self): + # GH#17067, GH#19723 __iadd__ and __isub__ should preserve index name + ser = Series([1, 2, 3]) + ser.index.name = "foo" + + ser.index += 1 + assert ser.index.name == "foo" + + ser.index -= 1 + assert ser.index.name == "foo" + + def test_add_string(self): + # from bug report + index = pd.Index(["a", "b", "c"]) + index2 = index + "foo" + + assert "a" not in index2 + assert "afoo" in index2 + + def test_iadd_string(self): + index = pd.Index(["a", "b", "c"]) + # doesn't fail test unless there is a check before `+=` + assert "a" in index + + index += "_x" + assert "a_x" in index + + def test_add(self): + index = pd.Index([str(i) for i in range(10)]) + expected = pd.Index(index.values * 2) + tm.assert_index_equal(index + index, expected) + tm.assert_index_equal(index + index.tolist(), expected) + tm.assert_index_equal(index.tolist() + index, expected) + + # test add and radd + index = pd.Index(list("abc")) + expected = pd.Index(["a1", "b1", "c1"]) + tm.assert_index_equal(index + "1", expected) + expected = pd.Index(["1a", "1b", "1c"]) + tm.assert_index_equal("1" + index, expected) + + def test_sub_fail(self): + index = pd.Index([str(i) for i in range(10)]) + + msg = "unsupported operand type|Cannot broadcast|sub' not supported" + with pytest.raises(TypeError, match=msg): + index - "a" + with pytest.raises(TypeError, match=msg): + index - index + with pytest.raises(TypeError, match=msg): + index - index.tolist() + with pytest.raises(TypeError, match=msg): + index.tolist() - index + + def test_sub_object(self): + # GH#19369 + index = pd.Index([Decimal(1), Decimal(2)]) + expected = pd.Index([Decimal(0), Decimal(1)]) + + result = index - Decimal(1) + tm.assert_index_equal(result, expected) + + result = index - pd.Index([Decimal(1), Decimal(1)]) + tm.assert_index_equal(result, expected) + + msg = "unsupported operand type" + with pytest.raises(TypeError, match=msg): + index - "foo" + + with pytest.raises(TypeError, match=msg): + index - np.array([2, "foo"], dtype=object) + + def test_rsub_object(self, fixed_now_ts): + # GH#19369 + index = pd.Index([Decimal(1), Decimal(2)]) + expected = pd.Index([Decimal(1), Decimal(0)]) + + result = Decimal(2) - index + tm.assert_index_equal(result, expected) + + result = np.array([Decimal(2), Decimal(2)]) - index + tm.assert_index_equal(result, expected) + + msg = "unsupported operand type" + with pytest.raises(TypeError, match=msg): + "foo" - index + + with pytest.raises(TypeError, match=msg): + np.array([True, fixed_now_ts]) - index + + +class MyIndex(pd.Index): + # Simple index subclass that tracks ops calls. + + _calls: int + + @classmethod + def _simple_new(cls, values, name=None, dtype=None): + result = object.__new__(cls) + result._data = values + result._name = name + result._calls = 0 + result._reset_identity() + + return result + + def __add__(self, other): + self._calls += 1 + return self._simple_new(self._data) + + def __radd__(self, other): + return self.__add__(other) + + +@pytest.mark.parametrize( + "other", + [ + [datetime.timedelta(1), datetime.timedelta(2)], + [datetime.datetime(2000, 1, 1), datetime.datetime(2000, 1, 2)], + [pd.Period("2000"), pd.Period("2001")], + ["a", "b"], + ], + ids=["timedelta", "datetime", "period", "object"], +) +def test_index_ops_defer_to_unknown_subclasses(other): + # https://github.com/pandas-dev/pandas/issues/31109 + values = np.array( + [datetime.date(2000, 1, 1), datetime.date(2000, 1, 2)], dtype=object + ) + a = MyIndex._simple_new(values) + other = pd.Index(other) + result = other + a + assert isinstance(result, MyIndex) + assert a._calls == 1 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/test_period.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/test_period.py new file mode 100644 index 0000000000000000000000000000000000000000..5535fe8ff928d10b994bd6556229e0163a358ab0 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/test_period.py @@ -0,0 +1,1675 @@ +# Arithmetic tests for DataFrame/Series/Index/Array classes that should +# behave identically. +# Specifically for Period dtype +import operator + +import numpy as np +import pytest + +from pandas._libs.tslibs import ( + IncompatibleFrequency, + Period, + Timestamp, + to_offset, +) +from pandas.errors import PerformanceWarning + +import pandas as pd +from pandas import ( + PeriodIndex, + Series, + Timedelta, + TimedeltaIndex, + period_range, +) +import pandas._testing as tm +from pandas.core import ops +from pandas.core.arrays import TimedeltaArray +from pandas.tests.arithmetic.common import ( + assert_invalid_addsub_type, + assert_invalid_comparison, + get_upcast_box, +) + +_common_mismatch = [ + pd.offsets.YearBegin(2), + pd.offsets.MonthBegin(1), + pd.offsets.Minute(), +] + + +@pytest.fixture( + params=[ + Timedelta(minutes=30).to_pytimedelta(), + np.timedelta64(30, "s"), + Timedelta(seconds=30), + ] + + _common_mismatch +) +def not_hourly(request): + """ + Several timedelta-like and DateOffset instances that are _not_ + compatible with Hourly frequencies. + """ + return request.param + + +@pytest.fixture( + params=[ + np.timedelta64(365, "D"), + Timedelta(days=365).to_pytimedelta(), + Timedelta(days=365), + ] + + _common_mismatch +) +def mismatched_freq(request): + """ + Several timedelta-like and DateOffset instances that are _not_ + compatible with Monthly or Annual frequencies. + """ + return request.param + + +# ------------------------------------------------------------------ +# Comparisons + + +class TestPeriodArrayLikeComparisons: + # Comparison tests for PeriodDtype vectors fully parametrized over + # DataFrame/Series/PeriodIndex/PeriodArray. Ideally all comparison + # tests will eventually end up here. + + @pytest.mark.parametrize("other", ["2017", Period("2017", freq="D")]) + def test_eq_scalar(self, other, box_with_array): + idx = PeriodIndex(["2017", "2017", "2018"], freq="D") + idx = tm.box_expected(idx, box_with_array) + xbox = get_upcast_box(idx, other, True) + + expected = np.array([True, True, False]) + expected = tm.box_expected(expected, xbox) + + result = idx == other + + tm.assert_equal(result, expected) + + def test_compare_zerodim(self, box_with_array): + # GH#26689 make sure we unbox zero-dimensional arrays + + pi = period_range("2000", periods=4) + other = np.array(pi.to_numpy()[0]) + + pi = tm.box_expected(pi, box_with_array) + xbox = get_upcast_box(pi, other, True) + + result = pi <= other + expected = np.array([True, False, False, False]) + expected = tm.box_expected(expected, xbox) + tm.assert_equal(result, expected) + + @pytest.mark.parametrize( + "scalar", + [ + "foo", + Timestamp("2021-01-01"), + Timedelta(days=4), + 9, + 9.5, + 2000, # specifically don't consider 2000 to match Period("2000", "D") + False, + None, + ], + ) + def test_compare_invalid_scalar(self, box_with_array, scalar): + # GH#28980 + # comparison with scalar that cannot be interpreted as a Period + pi = period_range("2000", periods=4) + parr = tm.box_expected(pi, box_with_array) + assert_invalid_comparison(parr, scalar, box_with_array) + + @pytest.mark.parametrize( + "other", + [ + pd.date_range("2000", periods=4).array, + pd.timedelta_range("1D", periods=4).array, + np.arange(4), + np.arange(4).astype(np.float64), + list(range(4)), + # match Period semantics by not treating integers as Periods + [2000, 2001, 2002, 2003], + np.arange(2000, 2004), + np.arange(2000, 2004).astype(object), + pd.Index([2000, 2001, 2002, 2003]), + ], + ) + def test_compare_invalid_listlike(self, box_with_array, other): + pi = period_range("2000", periods=4) + parr = tm.box_expected(pi, box_with_array) + assert_invalid_comparison(parr, other, box_with_array) + + @pytest.mark.parametrize("other_box", [list, np.array, lambda x: x.astype(object)]) + def test_compare_object_dtype(self, box_with_array, other_box): + pi = period_range("2000", periods=5) + parr = tm.box_expected(pi, box_with_array) + + other = other_box(pi) + xbox = get_upcast_box(parr, other, True) + + expected = np.array([True, True, True, True, True]) + expected = tm.box_expected(expected, xbox) + + result = parr == other + tm.assert_equal(result, expected) + result = parr <= other + tm.assert_equal(result, expected) + result = parr >= other + tm.assert_equal(result, expected) + + result = parr != other + tm.assert_equal(result, ~expected) + result = parr < other + tm.assert_equal(result, ~expected) + result = parr > other + tm.assert_equal(result, ~expected) + + other = other_box(pi[::-1]) + + expected = np.array([False, False, True, False, False]) + expected = tm.box_expected(expected, xbox) + result = parr == other + tm.assert_equal(result, expected) + + expected = np.array([True, True, True, False, False]) + expected = tm.box_expected(expected, xbox) + result = parr <= other + tm.assert_equal(result, expected) + + expected = np.array([False, False, True, True, True]) + expected = tm.box_expected(expected, xbox) + result = parr >= other + tm.assert_equal(result, expected) + + expected = np.array([True, True, False, True, True]) + expected = tm.box_expected(expected, xbox) + result = parr != other + tm.assert_equal(result, expected) + + expected = np.array([True, True, False, False, False]) + expected = tm.box_expected(expected, xbox) + result = parr < other + tm.assert_equal(result, expected) + + expected = np.array([False, False, False, True, True]) + expected = tm.box_expected(expected, xbox) + result = parr > other + tm.assert_equal(result, expected) + + +class TestPeriodIndexComparisons: + # TODO: parameterize over boxes + + def test_pi_cmp_period(self): + idx = period_range("2007-01", periods=20, freq="M") + per = idx[10] + + result = idx < per + exp = idx.values < idx.values[10] + tm.assert_numpy_array_equal(result, exp) + + # Tests Period.__richcmp__ against ndarray[object, ndim=2] + result = idx.values.reshape(10, 2) < per + tm.assert_numpy_array_equal(result, exp.reshape(10, 2)) + + # Tests Period.__richcmp__ against ndarray[object, ndim=0] + result = idx < np.array(per) + tm.assert_numpy_array_equal(result, exp) + + # TODO: moved from test_datetime64; de-duplicate with version below + def test_parr_cmp_period_scalar2(self, box_with_array): + pi = period_range("2000-01-01", periods=10, freq="D") + + val = pi[3] + expected = [x > val for x in pi] + + ser = tm.box_expected(pi, box_with_array) + xbox = get_upcast_box(ser, val, True) + + expected = tm.box_expected(expected, xbox) + result = ser > val + tm.assert_equal(result, expected) + + val = pi[5] + result = ser > val + expected = [x > val for x in pi] + expected = tm.box_expected(expected, xbox) + tm.assert_equal(result, expected) + + @pytest.mark.parametrize("freq", ["M", "2M", "3M"]) + def test_parr_cmp_period_scalar(self, freq, box_with_array): + # GH#13200 + base = PeriodIndex(["2011-01", "2011-02", "2011-03", "2011-04"], freq=freq) + base = tm.box_expected(base, box_with_array) + per = Period("2011-02", freq=freq) + xbox = get_upcast_box(base, per, True) + + exp = np.array([False, True, False, False]) + exp = tm.box_expected(exp, xbox) + tm.assert_equal(base == per, exp) + tm.assert_equal(per == base, exp) + + exp = np.array([True, False, True, True]) + exp = tm.box_expected(exp, xbox) + tm.assert_equal(base != per, exp) + tm.assert_equal(per != base, exp) + + exp = np.array([False, False, True, True]) + exp = tm.box_expected(exp, xbox) + tm.assert_equal(base > per, exp) + tm.assert_equal(per < base, exp) + + exp = np.array([True, False, False, False]) + exp = tm.box_expected(exp, xbox) + tm.assert_equal(base < per, exp) + tm.assert_equal(per > base, exp) + + exp = np.array([False, True, True, True]) + exp = tm.box_expected(exp, xbox) + tm.assert_equal(base >= per, exp) + tm.assert_equal(per <= base, exp) + + exp = np.array([True, True, False, False]) + exp = tm.box_expected(exp, xbox) + tm.assert_equal(base <= per, exp) + tm.assert_equal(per >= base, exp) + + @pytest.mark.parametrize("freq", ["M", "2M", "3M"]) + def test_parr_cmp_pi(self, freq, box_with_array): + # GH#13200 + base = PeriodIndex(["2011-01", "2011-02", "2011-03", "2011-04"], freq=freq) + base = tm.box_expected(base, box_with_array) + + # TODO: could also box idx? + idx = PeriodIndex(["2011-02", "2011-01", "2011-03", "2011-05"], freq=freq) + + xbox = get_upcast_box(base, idx, True) + + exp = np.array([False, False, True, False]) + exp = tm.box_expected(exp, xbox) + tm.assert_equal(base == idx, exp) + + exp = np.array([True, True, False, True]) + exp = tm.box_expected(exp, xbox) + tm.assert_equal(base != idx, exp) + + exp = np.array([False, True, False, False]) + exp = tm.box_expected(exp, xbox) + tm.assert_equal(base > idx, exp) + + exp = np.array([True, False, False, True]) + exp = tm.box_expected(exp, xbox) + tm.assert_equal(base < idx, exp) + + exp = np.array([False, True, True, False]) + exp = tm.box_expected(exp, xbox) + tm.assert_equal(base >= idx, exp) + + exp = np.array([True, False, True, True]) + exp = tm.box_expected(exp, xbox) + tm.assert_equal(base <= idx, exp) + + @pytest.mark.parametrize("freq", ["M", "2M", "3M"]) + def test_parr_cmp_pi_mismatched_freq(self, freq, box_with_array): + # GH#13200 + # different base freq + base = PeriodIndex(["2011-01", "2011-02", "2011-03", "2011-04"], freq=freq) + base = tm.box_expected(base, box_with_array) + + msg = rf"Invalid comparison between dtype=period\[{freq}\] and Period" + with pytest.raises(TypeError, match=msg): + base <= Period("2011", freq="Y") + + with pytest.raises(TypeError, match=msg): + Period("2011", freq="Y") >= base + + # TODO: Could parametrize over boxes for idx? + idx = PeriodIndex(["2011", "2012", "2013", "2014"], freq="Y") + rev_msg = r"Invalid comparison between dtype=period\[Y-DEC\] and PeriodArray" + idx_msg = rev_msg if box_with_array in [tm.to_array, pd.array] else msg + with pytest.raises(TypeError, match=idx_msg): + base <= idx + + # Different frequency + msg = rf"Invalid comparison between dtype=period\[{freq}\] and Period" + with pytest.raises(TypeError, match=msg): + base <= Period("2011", freq="4M") + + with pytest.raises(TypeError, match=msg): + Period("2011", freq="4M") >= base + + idx = PeriodIndex(["2011", "2012", "2013", "2014"], freq="4M") + rev_msg = r"Invalid comparison between dtype=period\[4M\] and PeriodArray" + idx_msg = rev_msg if box_with_array in [tm.to_array, pd.array] else msg + with pytest.raises(TypeError, match=idx_msg): + base <= idx + + @pytest.mark.parametrize("freq", ["M", "2M", "3M"]) + def test_pi_cmp_nat(self, freq): + idx1 = PeriodIndex(["2011-01", "2011-02", "NaT", "2011-05"], freq=freq) + per = idx1[1] + + result = idx1 > per + exp = np.array([False, False, False, True]) + tm.assert_numpy_array_equal(result, exp) + result = per < idx1 + tm.assert_numpy_array_equal(result, exp) + + result = idx1 == pd.NaT + exp = np.array([False, False, False, False]) + tm.assert_numpy_array_equal(result, exp) + result = pd.NaT == idx1 + tm.assert_numpy_array_equal(result, exp) + + result = idx1 != pd.NaT + exp = np.array([True, True, True, True]) + tm.assert_numpy_array_equal(result, exp) + result = pd.NaT != idx1 + tm.assert_numpy_array_equal(result, exp) + + idx2 = PeriodIndex(["2011-02", "2011-01", "2011-04", "NaT"], freq=freq) + result = idx1 < idx2 + exp = np.array([True, False, False, False]) + tm.assert_numpy_array_equal(result, exp) + + result = idx1 == idx2 + exp = np.array([False, False, False, False]) + tm.assert_numpy_array_equal(result, exp) + + result = idx1 != idx2 + exp = np.array([True, True, True, True]) + tm.assert_numpy_array_equal(result, exp) + + result = idx1 == idx1 + exp = np.array([True, True, False, True]) + tm.assert_numpy_array_equal(result, exp) + + result = idx1 != idx1 + exp = np.array([False, False, True, False]) + tm.assert_numpy_array_equal(result, exp) + + @pytest.mark.parametrize("freq", ["M", "2M", "3M"]) + def test_pi_cmp_nat_mismatched_freq_raises(self, freq): + idx1 = PeriodIndex(["2011-01", "2011-02", "NaT", "2011-05"], freq=freq) + + diff = PeriodIndex(["2011-02", "2011-01", "2011-04", "NaT"], freq="4M") + msg = rf"Invalid comparison between dtype=period\[{freq}\] and PeriodArray" + with pytest.raises(TypeError, match=msg): + idx1 > diff + + result = idx1 == diff + expected = np.array([False, False, False, False], dtype=bool) + tm.assert_numpy_array_equal(result, expected) + + # TODO: De-duplicate with test_pi_cmp_nat + @pytest.mark.parametrize("dtype", [object, None]) + def test_comp_nat(self, dtype): + left = PeriodIndex([Period("2011-01-01"), pd.NaT, Period("2011-01-03")]) + right = PeriodIndex([pd.NaT, pd.NaT, Period("2011-01-03")]) + + if dtype is not None: + left = left.astype(dtype) + right = right.astype(dtype) + + result = left == right + expected = np.array([False, False, True]) + tm.assert_numpy_array_equal(result, expected) + + result = left != right + expected = np.array([True, True, False]) + tm.assert_numpy_array_equal(result, expected) + + expected = np.array([False, False, False]) + tm.assert_numpy_array_equal(left == pd.NaT, expected) + tm.assert_numpy_array_equal(pd.NaT == right, expected) + + expected = np.array([True, True, True]) + tm.assert_numpy_array_equal(left != pd.NaT, expected) + tm.assert_numpy_array_equal(pd.NaT != left, expected) + + expected = np.array([False, False, False]) + tm.assert_numpy_array_equal(left < pd.NaT, expected) + tm.assert_numpy_array_equal(pd.NaT > left, expected) + + +class TestPeriodSeriesComparisons: + def test_cmp_series_period_series_mixed_freq(self): + # GH#13200 + base = Series( + [ + Period("2011", freq="Y"), + Period("2011-02", freq="M"), + Period("2013", freq="Y"), + Period("2011-04", freq="M"), + ] + ) + + ser = Series( + [ + Period("2012", freq="Y"), + Period("2011-01", freq="M"), + Period("2013", freq="Y"), + Period("2011-05", freq="M"), + ] + ) + + exp = Series([False, False, True, False]) + tm.assert_series_equal(base == ser, exp) + + exp = Series([True, True, False, True]) + tm.assert_series_equal(base != ser, exp) + + exp = Series([False, True, False, False]) + tm.assert_series_equal(base > ser, exp) + + exp = Series([True, False, False, True]) + tm.assert_series_equal(base < ser, exp) + + exp = Series([False, True, True, False]) + tm.assert_series_equal(base >= ser, exp) + + exp = Series([True, False, True, True]) + tm.assert_series_equal(base <= ser, exp) + + +class TestPeriodIndexSeriesComparisonConsistency: + """Test PeriodIndex and Period Series Ops consistency""" + + # TODO: needs parametrization+de-duplication + + def _check(self, values, func, expected): + # Test PeriodIndex and Period Series Ops consistency + + idx = PeriodIndex(values) + result = func(idx) + + # check that we don't pass an unwanted type to tm.assert_equal + assert isinstance(expected, (pd.Index, np.ndarray)) + tm.assert_equal(result, expected) + + s = Series(values) + result = func(s) + + exp = Series(expected, name=values.name) + tm.assert_series_equal(result, exp) + + def test_pi_comp_period(self): + idx = PeriodIndex( + ["2011-01", "2011-02", "2011-03", "2011-04"], freq="M", name="idx" + ) + per = idx[2] + + f = lambda x: x == per + exp = np.array([False, False, True, False], dtype=np.bool_) + self._check(idx, f, exp) + f = lambda x: per == x + self._check(idx, f, exp) + + f = lambda x: x != per + exp = np.array([True, True, False, True], dtype=np.bool_) + self._check(idx, f, exp) + f = lambda x: per != x + self._check(idx, f, exp) + + f = lambda x: per >= x + exp = np.array([True, True, True, False], dtype=np.bool_) + self._check(idx, f, exp) + + f = lambda x: x > per + exp = np.array([False, False, False, True], dtype=np.bool_) + self._check(idx, f, exp) + + f = lambda x: per >= x + exp = np.array([True, True, True, False], dtype=np.bool_) + self._check(idx, f, exp) + + def test_pi_comp_period_nat(self): + idx = PeriodIndex( + ["2011-01", "NaT", "2011-03", "2011-04"], freq="M", name="idx" + ) + per = idx[2] + + f = lambda x: x == per + exp = np.array([False, False, True, False], dtype=np.bool_) + self._check(idx, f, exp) + f = lambda x: per == x + self._check(idx, f, exp) + + f = lambda x: x == pd.NaT + exp = np.array([False, False, False, False], dtype=np.bool_) + self._check(idx, f, exp) + f = lambda x: pd.NaT == x + self._check(idx, f, exp) + + f = lambda x: x != per + exp = np.array([True, True, False, True], dtype=np.bool_) + self._check(idx, f, exp) + f = lambda x: per != x + self._check(idx, f, exp) + + f = lambda x: x != pd.NaT + exp = np.array([True, True, True, True], dtype=np.bool_) + self._check(idx, f, exp) + f = lambda x: pd.NaT != x + self._check(idx, f, exp) + + f = lambda x: per >= x + exp = np.array([True, False, True, False], dtype=np.bool_) + self._check(idx, f, exp) + + f = lambda x: x < per + exp = np.array([True, False, False, False], dtype=np.bool_) + self._check(idx, f, exp) + + f = lambda x: x > pd.NaT + exp = np.array([False, False, False, False], dtype=np.bool_) + self._check(idx, f, exp) + + f = lambda x: pd.NaT >= x + exp = np.array([False, False, False, False], dtype=np.bool_) + self._check(idx, f, exp) + + +# ------------------------------------------------------------------ +# Arithmetic + + +class TestPeriodFrameArithmetic: + def test_ops_frame_period(self): + # GH#13043 + df = pd.DataFrame( + { + "A": [Period("2015-01", freq="M"), Period("2015-02", freq="M")], + "B": [Period("2014-01", freq="M"), Period("2014-02", freq="M")], + } + ) + assert df["A"].dtype == "Period[M]" + assert df["B"].dtype == "Period[M]" + + p = Period("2015-03", freq="M") + off = p.freq + # dtype will be object because of original dtype + exp = pd.DataFrame( + { + "A": np.array([2 * off, 1 * off], dtype=object), + "B": np.array([14 * off, 13 * off], dtype=object), + } + ) + tm.assert_frame_equal(p - df, exp) + tm.assert_frame_equal(df - p, -1 * exp) + + df2 = pd.DataFrame( + { + "A": [Period("2015-05", freq="M"), Period("2015-06", freq="M")], + "B": [Period("2015-05", freq="M"), Period("2015-06", freq="M")], + } + ) + assert df2["A"].dtype == "Period[M]" + assert df2["B"].dtype == "Period[M]" + + exp = pd.DataFrame( + { + "A": np.array([4 * off, 4 * off], dtype=object), + "B": np.array([16 * off, 16 * off], dtype=object), + } + ) + tm.assert_frame_equal(df2 - df, exp) + tm.assert_frame_equal(df - df2, -1 * exp) + + +class TestPeriodIndexArithmetic: + # --------------------------------------------------------------- + # __add__/__sub__ with PeriodIndex + # PeriodIndex + other is defined for integers and timedelta-like others + # PeriodIndex - other is defined for integers, timedelta-like others, + # and PeriodIndex (with matching freq) + + def test_parr_add_iadd_parr_raises(self, box_with_array): + rng = period_range("1/1/2000", freq="D", periods=5) + other = period_range("1/6/2000", freq="D", periods=5) + # TODO: parametrize over boxes for other? + + rng = tm.box_expected(rng, box_with_array) + # An earlier implementation of PeriodIndex addition performed + # a set operation (union). This has since been changed to + # raise a TypeError. See GH#14164 and GH#13077 for historical + # reference. + msg = r"unsupported operand type\(s\) for \+: .* and .*" + with pytest.raises(TypeError, match=msg): + rng + other + + with pytest.raises(TypeError, match=msg): + rng += other + + def test_pi_sub_isub_pi(self): + # GH#20049 + # For historical reference see GH#14164, GH#13077. + # PeriodIndex subtraction originally performed set difference, + # then changed to raise TypeError before being implemented in GH#20049 + rng = period_range("1/1/2000", freq="D", periods=5) + other = period_range("1/6/2000", freq="D", periods=5) + + off = rng.freq + expected = pd.Index([-5 * off] * 5) + result = rng - other + tm.assert_index_equal(result, expected) + + rng -= other + tm.assert_index_equal(rng, expected) + + def test_pi_sub_pi_with_nat(self): + rng = period_range("1/1/2000", freq="D", periods=5) + other = rng[1:].insert(0, pd.NaT) + assert other[1:].equals(rng[1:]) + + result = rng - other + off = rng.freq + expected = pd.Index([pd.NaT, 0 * off, 0 * off, 0 * off, 0 * off]) + tm.assert_index_equal(result, expected) + + def test_parr_sub_pi_mismatched_freq(self, box_with_array, box_with_array2): + rng = period_range("1/1/2000", freq="D", periods=5) + other = period_range("1/6/2000", freq="h", periods=5) + + rng = tm.box_expected(rng, box_with_array) + other = tm.box_expected(other, box_with_array2) + msg = r"Input has different freq=[hD] from PeriodArray\(freq=[Dh]\)" + with pytest.raises(IncompatibleFrequency, match=msg): + rng - other + + @pytest.mark.parametrize("n", [1, 2, 3, 4]) + def test_sub_n_gt_1_ticks(self, tick_classes, n): + # GH 23878 + p1_d = "19910905" + p2_d = "19920406" + p1 = PeriodIndex([p1_d], freq=tick_classes(n)) + p2 = PeriodIndex([p2_d], freq=tick_classes(n)) + + expected = PeriodIndex([p2_d], freq=p2.freq.base) - PeriodIndex( + [p1_d], freq=p1.freq.base + ) + + tm.assert_index_equal((p2 - p1), expected) + + @pytest.mark.parametrize("n", [1, 2, 3, 4]) + @pytest.mark.parametrize( + "offset, kwd_name", + [ + (pd.offsets.YearEnd, "month"), + (pd.offsets.QuarterEnd, "startingMonth"), + (pd.offsets.MonthEnd, None), + (pd.offsets.Week, "weekday"), + ], + ) + def test_sub_n_gt_1_offsets(self, offset, kwd_name, n): + # GH 23878 + kwds = {kwd_name: 3} if kwd_name is not None else {} + p1_d = "19910905" + p2_d = "19920406" + freq = offset(n, normalize=False, **kwds) + p1 = PeriodIndex([p1_d], freq=freq) + p2 = PeriodIndex([p2_d], freq=freq) + + result = p2 - p1 + expected = PeriodIndex([p2_d], freq=freq.base) - PeriodIndex( + [p1_d], freq=freq.base + ) + + tm.assert_index_equal(result, expected) + + # ------------------------------------------------------------- + # Invalid Operations + + @pytest.mark.parametrize( + "other", + [ + # datetime scalars + Timestamp("2016-01-01"), + Timestamp("2016-01-01").to_pydatetime(), + Timestamp("2016-01-01").to_datetime64(), + # datetime-like arrays + pd.date_range("2016-01-01", periods=3, freq="h"), + pd.date_range("2016-01-01", periods=3, tz="Europe/Brussels"), + pd.date_range("2016-01-01", periods=3, freq="s")._data, + pd.date_range("2016-01-01", periods=3, tz="Asia/Tokyo")._data, + # Miscellaneous invalid types + 3.14, + np.array([2.0, 3.0, 4.0]), + ], + ) + def test_parr_add_sub_invalid(self, other, box_with_array): + # GH#23215 + rng = period_range("1/1/2000", freq="D", periods=3) + rng = tm.box_expected(rng, box_with_array) + + msg = "|".join( + [ + r"(:?cannot add PeriodArray and .*)", + r"(:?cannot subtract .* from (:?a\s)?.*)", + r"(:?unsupported operand type\(s\) for \+: .* and .*)", + r"unsupported operand type\(s\) for [+-]: .* and .*", + ] + ) + assert_invalid_addsub_type(rng, other, msg) + with pytest.raises(TypeError, match=msg): + rng + other + with pytest.raises(TypeError, match=msg): + other + rng + with pytest.raises(TypeError, match=msg): + rng - other + with pytest.raises(TypeError, match=msg): + other - rng + + # ----------------------------------------------------------------- + # __add__/__sub__ with ndarray[datetime64] and ndarray[timedelta64] + + def test_pi_add_sub_td64_array_non_tick_raises(self): + rng = period_range("1/1/2000", freq="Q", periods=3) + tdi = TimedeltaIndex(["-1 Day", "-1 Day", "-1 Day"]) + tdarr = tdi.values + + msg = r"Cannot add or subtract timedelta64\[ns\] dtype from period\[Q-DEC\]" + with pytest.raises(TypeError, match=msg): + rng + tdarr + with pytest.raises(TypeError, match=msg): + tdarr + rng + + with pytest.raises(TypeError, match=msg): + rng - tdarr + msg = r"cannot subtract PeriodArray from TimedeltaArray" + with pytest.raises(TypeError, match=msg): + tdarr - rng + + def test_pi_add_sub_td64_array_tick(self): + # PeriodIndex + Timedelta-like is allowed only with + # tick-like frequencies + rng = period_range("1/1/2000", freq="90D", periods=3) + tdi = TimedeltaIndex(["-1 Day", "-1 Day", "-1 Day"]) + tdarr = tdi.values + + expected = period_range("12/31/1999", freq="90D", periods=3) + result = rng + tdi + tm.assert_index_equal(result, expected) + result = rng + tdarr + tm.assert_index_equal(result, expected) + result = tdi + rng + tm.assert_index_equal(result, expected) + result = tdarr + rng + tm.assert_index_equal(result, expected) + + expected = period_range("1/2/2000", freq="90D", periods=3) + + result = rng - tdi + tm.assert_index_equal(result, expected) + result = rng - tdarr + tm.assert_index_equal(result, expected) + + msg = r"cannot subtract .* from .*" + with pytest.raises(TypeError, match=msg): + tdarr - rng + + with pytest.raises(TypeError, match=msg): + tdi - rng + + @pytest.mark.parametrize("pi_freq", ["D", "W", "Q", "h"]) + @pytest.mark.parametrize("tdi_freq", [None, "h"]) + def test_parr_sub_td64array(self, box_with_array, tdi_freq, pi_freq): + box = box_with_array + xbox = box if box not in [pd.array, tm.to_array] else pd.Index + + tdi = TimedeltaIndex(["1 hours", "2 hours"], freq=tdi_freq) + dti = Timestamp("2018-03-07 17:16:40") + tdi + pi = dti.to_period(pi_freq) + + # TODO: parametrize over box for pi? + td64obj = tm.box_expected(tdi, box) + + if pi_freq == "h": + result = pi - td64obj + expected = (pi.to_timestamp("s") - tdi).to_period(pi_freq) + expected = tm.box_expected(expected, xbox) + tm.assert_equal(result, expected) + + # Subtract from scalar + result = pi[0] - td64obj + expected = (pi[0].to_timestamp("s") - tdi).to_period(pi_freq) + expected = tm.box_expected(expected, box) + tm.assert_equal(result, expected) + + elif pi_freq == "D": + # Tick, but non-compatible + msg = ( + "Cannot add/subtract timedelta-like from PeriodArray that is " + "not an integer multiple of the PeriodArray's freq." + ) + with pytest.raises(IncompatibleFrequency, match=msg): + pi - td64obj + + with pytest.raises(IncompatibleFrequency, match=msg): + pi[0] - td64obj + + else: + # With non-Tick freq, we could not add timedelta64 array regardless + # of what its resolution is + msg = "Cannot add or subtract timedelta64" + with pytest.raises(TypeError, match=msg): + pi - td64obj + with pytest.raises(TypeError, match=msg): + pi[0] - td64obj + + # ----------------------------------------------------------------- + # operations with array/Index of DateOffset objects + + @pytest.mark.parametrize("box", [np.array, pd.Index]) + def test_pi_add_offset_array(self, box): + # GH#18849 + pi = PeriodIndex([Period("2015Q1"), Period("2016Q2")]) + offs = box( + [ + pd.offsets.QuarterEnd(n=1, startingMonth=12), + pd.offsets.QuarterEnd(n=-2, startingMonth=12), + ] + ) + expected = PeriodIndex([Period("2015Q2"), Period("2015Q4")]).astype(object) + + with tm.assert_produces_warning(PerformanceWarning): + res = pi + offs + tm.assert_index_equal(res, expected) + + with tm.assert_produces_warning(PerformanceWarning): + res2 = offs + pi + tm.assert_index_equal(res2, expected) + + unanchored = np.array([pd.offsets.Hour(n=1), pd.offsets.Minute(n=-2)]) + # addition/subtraction ops with incompatible offsets should issue + # a PerformanceWarning and _then_ raise a TypeError. + msg = r"Input cannot be converted to Period\(freq=Q-DEC\)" + with pytest.raises(IncompatibleFrequency, match=msg): + with tm.assert_produces_warning(PerformanceWarning): + pi + unanchored + with pytest.raises(IncompatibleFrequency, match=msg): + with tm.assert_produces_warning(PerformanceWarning): + unanchored + pi + + @pytest.mark.parametrize("box", [np.array, pd.Index]) + def test_pi_sub_offset_array(self, box): + # GH#18824 + pi = PeriodIndex([Period("2015Q1"), Period("2016Q2")]) + other = box( + [ + pd.offsets.QuarterEnd(n=1, startingMonth=12), + pd.offsets.QuarterEnd(n=-2, startingMonth=12), + ] + ) + + expected = PeriodIndex([pi[n] - other[n] for n in range(len(pi))]) + expected = expected.astype(object) + + with tm.assert_produces_warning(PerformanceWarning): + res = pi - other + tm.assert_index_equal(res, expected) + + anchored = box([pd.offsets.MonthEnd(), pd.offsets.Day(n=2)]) + + # addition/subtraction ops with anchored offsets should issue + # a PerformanceWarning and _then_ raise a TypeError. + msg = r"Input has different freq=-1M from Period\(freq=Q-DEC\)" + with pytest.raises(IncompatibleFrequency, match=msg): + with tm.assert_produces_warning(PerformanceWarning): + pi - anchored + with pytest.raises(IncompatibleFrequency, match=msg): + with tm.assert_produces_warning(PerformanceWarning): + anchored - pi + + def test_pi_add_iadd_int(self, one): + # Variants of `one` for #19012 + rng = period_range("2000-01-01 09:00", freq="h", periods=10) + result = rng + one + expected = period_range("2000-01-01 10:00", freq="h", periods=10) + tm.assert_index_equal(result, expected) + rng += one + tm.assert_index_equal(rng, expected) + + def test_pi_sub_isub_int(self, one): + """ + PeriodIndex.__sub__ and __isub__ with several representations of + the integer 1, e.g. int, np.int64, np.uint8, ... + """ + rng = period_range("2000-01-01 09:00", freq="h", periods=10) + result = rng - one + expected = period_range("2000-01-01 08:00", freq="h", periods=10) + tm.assert_index_equal(result, expected) + rng -= one + tm.assert_index_equal(rng, expected) + + @pytest.mark.parametrize("five", [5, np.array(5, dtype=np.int64)]) + def test_pi_sub_intlike(self, five): + rng = period_range("2007-01", periods=50) + + result = rng - five + exp = rng + (-five) + tm.assert_index_equal(result, exp) + + def test_pi_add_sub_int_array_freqn_gt1(self): + # GH#47209 test adding array of ints when freq.n > 1 matches + # scalar behavior + pi = period_range("2016-01-01", periods=10, freq="2D") + arr = np.arange(10) + result = pi + arr + expected = pd.Index([x + y for x, y in zip(pi, arr)]) + tm.assert_index_equal(result, expected) + + result = pi - arr + expected = pd.Index([x - y for x, y in zip(pi, arr)]) + tm.assert_index_equal(result, expected) + + def test_pi_sub_isub_offset(self): + # offset + # DateOffset + rng = period_range("2014", "2024", freq="Y") + result = rng - pd.offsets.YearEnd(5) + expected = period_range("2009", "2019", freq="Y") + tm.assert_index_equal(result, expected) + rng -= pd.offsets.YearEnd(5) + tm.assert_index_equal(rng, expected) + + rng = period_range("2014-01", "2016-12", freq="M") + result = rng - pd.offsets.MonthEnd(5) + expected = period_range("2013-08", "2016-07", freq="M") + tm.assert_index_equal(result, expected) + + rng -= pd.offsets.MonthEnd(5) + tm.assert_index_equal(rng, expected) + + @pytest.mark.parametrize("transpose", [True, False]) + def test_pi_add_offset_n_gt1(self, box_with_array, transpose): + # GH#23215 + # add offset to PeriodIndex with freq.n > 1 + + per = Period("2016-01", freq="2M") + pi = PeriodIndex([per]) + + expected = PeriodIndex(["2016-03"], freq="2M") + + pi = tm.box_expected(pi, box_with_array, transpose=transpose) + expected = tm.box_expected(expected, box_with_array, transpose=transpose) + + result = pi + per.freq + tm.assert_equal(result, expected) + + result = per.freq + pi + tm.assert_equal(result, expected) + + def test_pi_add_offset_n_gt1_not_divisible(self, box_with_array): + # GH#23215 + # PeriodIndex with freq.n > 1 add offset with offset.n % freq.n != 0 + pi = PeriodIndex(["2016-01"], freq="2M") + expected = PeriodIndex(["2016-04"], freq="2M") + + pi = tm.box_expected(pi, box_with_array) + expected = tm.box_expected(expected, box_with_array) + + result = pi + to_offset("3ME") + tm.assert_equal(result, expected) + + result = to_offset("3ME") + pi + tm.assert_equal(result, expected) + + # --------------------------------------------------------------- + # __add__/__sub__ with integer arrays + + @pytest.mark.parametrize("int_holder", [np.array, pd.Index]) + @pytest.mark.parametrize("op", [operator.add, ops.radd]) + def test_pi_add_intarray(self, int_holder, op): + # GH#19959 + pi = PeriodIndex([Period("2015Q1"), Period("NaT")]) + other = int_holder([4, -1]) + + result = op(pi, other) + expected = PeriodIndex([Period("2016Q1"), Period("NaT")]) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("int_holder", [np.array, pd.Index]) + def test_pi_sub_intarray(self, int_holder): + # GH#19959 + pi = PeriodIndex([Period("2015Q1"), Period("NaT")]) + other = int_holder([4, -1]) + + result = pi - other + expected = PeriodIndex([Period("2014Q1"), Period("NaT")]) + tm.assert_index_equal(result, expected) + + msg = r"bad operand type for unary -: 'PeriodArray'" + with pytest.raises(TypeError, match=msg): + other - pi + + # --------------------------------------------------------------- + # Timedelta-like (timedelta, timedelta64, Timedelta, Tick) + # TODO: Some of these are misnomers because of non-Tick DateOffsets + + def test_parr_add_timedeltalike_minute_gt1(self, three_days, box_with_array): + # GH#23031 adding a time-delta-like offset to a PeriodArray that has + # minute frequency with n != 1. A more general case is tested below + # in test_pi_add_timedeltalike_tick_gt1, but here we write out the + # expected result more explicitly. + other = three_days + rng = period_range("2014-05-01", periods=3, freq="2D") + rng = tm.box_expected(rng, box_with_array) + + expected = PeriodIndex(["2014-05-04", "2014-05-06", "2014-05-08"], freq="2D") + expected = tm.box_expected(expected, box_with_array) + + result = rng + other + tm.assert_equal(result, expected) + + result = other + rng + tm.assert_equal(result, expected) + + # subtraction + expected = PeriodIndex(["2014-04-28", "2014-04-30", "2014-05-02"], freq="2D") + expected = tm.box_expected(expected, box_with_array) + result = rng - other + tm.assert_equal(result, expected) + + msg = "|".join( + [ + r"bad operand type for unary -: 'PeriodArray'", + r"cannot subtract PeriodArray from timedelta64\[[hD]\]", + ] + ) + with pytest.raises(TypeError, match=msg): + other - rng + + @pytest.mark.parametrize("freqstr", ["5ns", "5us", "5ms", "5s", "5min", "5h", "5d"]) + def test_parr_add_timedeltalike_tick_gt1(self, three_days, freqstr, box_with_array): + # GH#23031 adding a time-delta-like offset to a PeriodArray that has + # tick-like frequency with n != 1 + other = three_days + rng = period_range("2014-05-01", periods=6, freq=freqstr) + first = rng[0] + rng = tm.box_expected(rng, box_with_array) + + expected = period_range(first + other, periods=6, freq=freqstr) + expected = tm.box_expected(expected, box_with_array) + + result = rng + other + tm.assert_equal(result, expected) + + result = other + rng + tm.assert_equal(result, expected) + + # subtraction + expected = period_range(first - other, periods=6, freq=freqstr) + expected = tm.box_expected(expected, box_with_array) + result = rng - other + tm.assert_equal(result, expected) + msg = "|".join( + [ + r"bad operand type for unary -: 'PeriodArray'", + r"cannot subtract PeriodArray from timedelta64\[[hD]\]", + ] + ) + with pytest.raises(TypeError, match=msg): + other - rng + + def test_pi_add_iadd_timedeltalike_daily(self, three_days): + # Tick + other = three_days + rng = period_range("2014-05-01", "2014-05-15", freq="D") + expected = period_range("2014-05-04", "2014-05-18", freq="D") + + result = rng + other + tm.assert_index_equal(result, expected) + + rng += other + tm.assert_index_equal(rng, expected) + + def test_pi_sub_isub_timedeltalike_daily(self, three_days): + # Tick-like 3 Days + other = three_days + rng = period_range("2014-05-01", "2014-05-15", freq="D") + expected = period_range("2014-04-28", "2014-05-12", freq="D") + + result = rng - other + tm.assert_index_equal(result, expected) + + rng -= other + tm.assert_index_equal(rng, expected) + + def test_parr_add_sub_timedeltalike_freq_mismatch_daily( + self, not_daily, box_with_array + ): + other = not_daily + rng = period_range("2014-05-01", "2014-05-15", freq="D") + rng = tm.box_expected(rng, box_with_array) + + msg = "|".join( + [ + # non-timedelta-like DateOffset + "Input has different freq(=.+)? from Period.*?\\(freq=D\\)", + # timedelta/td64/Timedelta but not a multiple of 24H + "Cannot add/subtract timedelta-like from PeriodArray that is " + "not an integer multiple of the PeriodArray's freq.", + ] + ) + with pytest.raises(IncompatibleFrequency, match=msg): + rng + other + with pytest.raises(IncompatibleFrequency, match=msg): + rng += other + with pytest.raises(IncompatibleFrequency, match=msg): + rng - other + with pytest.raises(IncompatibleFrequency, match=msg): + rng -= other + + def test_pi_add_iadd_timedeltalike_hourly(self, two_hours): + other = two_hours + rng = period_range("2014-01-01 10:00", "2014-01-05 10:00", freq="h") + expected = period_range("2014-01-01 12:00", "2014-01-05 12:00", freq="h") + + result = rng + other + tm.assert_index_equal(result, expected) + + rng += other + tm.assert_index_equal(rng, expected) + + def test_parr_add_timedeltalike_mismatched_freq_hourly( + self, not_hourly, box_with_array + ): + other = not_hourly + rng = period_range("2014-01-01 10:00", "2014-01-05 10:00", freq="h") + rng = tm.box_expected(rng, box_with_array) + msg = "|".join( + [ + # non-timedelta-like DateOffset + "Input has different freq(=.+)? from Period.*?\\(freq=h\\)", + # timedelta/td64/Timedelta but not a multiple of 24H + "Cannot add/subtract timedelta-like from PeriodArray that is " + "not an integer multiple of the PeriodArray's freq.", + ] + ) + + with pytest.raises(IncompatibleFrequency, match=msg): + rng + other + + with pytest.raises(IncompatibleFrequency, match=msg): + rng += other + + def test_pi_sub_isub_timedeltalike_hourly(self, two_hours): + other = two_hours + rng = period_range("2014-01-01 10:00", "2014-01-05 10:00", freq="h") + expected = period_range("2014-01-01 08:00", "2014-01-05 08:00", freq="h") + + result = rng - other + tm.assert_index_equal(result, expected) + + rng -= other + tm.assert_index_equal(rng, expected) + + def test_add_iadd_timedeltalike_annual(self): + # offset + # DateOffset + rng = period_range("2014", "2024", freq="Y") + result = rng + pd.offsets.YearEnd(5) + expected = period_range("2019", "2029", freq="Y") + tm.assert_index_equal(result, expected) + rng += pd.offsets.YearEnd(5) + tm.assert_index_equal(rng, expected) + + def test_pi_add_sub_timedeltalike_freq_mismatch_annual(self, mismatched_freq): + other = mismatched_freq + rng = period_range("2014", "2024", freq="Y") + msg = "Input has different freq(=.+)? from Period.*?\\(freq=Y-DEC\\)" + with pytest.raises(IncompatibleFrequency, match=msg): + rng + other + with pytest.raises(IncompatibleFrequency, match=msg): + rng += other + with pytest.raises(IncompatibleFrequency, match=msg): + rng - other + with pytest.raises(IncompatibleFrequency, match=msg): + rng -= other + + def test_pi_add_iadd_timedeltalike_M(self): + rng = period_range("2014-01", "2016-12", freq="M") + expected = period_range("2014-06", "2017-05", freq="M") + + result = rng + pd.offsets.MonthEnd(5) + tm.assert_index_equal(result, expected) + + rng += pd.offsets.MonthEnd(5) + tm.assert_index_equal(rng, expected) + + def test_pi_add_sub_timedeltalike_freq_mismatch_monthly(self, mismatched_freq): + other = mismatched_freq + rng = period_range("2014-01", "2016-12", freq="M") + msg = "Input has different freq(=.+)? from Period.*?\\(freq=M\\)" + with pytest.raises(IncompatibleFrequency, match=msg): + rng + other + with pytest.raises(IncompatibleFrequency, match=msg): + rng += other + with pytest.raises(IncompatibleFrequency, match=msg): + rng - other + with pytest.raises(IncompatibleFrequency, match=msg): + rng -= other + + @pytest.mark.parametrize("transpose", [True, False]) + def test_parr_add_sub_td64_nat(self, box_with_array, transpose): + # GH#23320 special handling for timedelta64("NaT") + pi = period_range("1994-04-01", periods=9, freq="19D") + other = np.timedelta64("NaT") + expected = PeriodIndex(["NaT"] * 9, freq="19D") + + obj = tm.box_expected(pi, box_with_array, transpose=transpose) + expected = tm.box_expected(expected, box_with_array, transpose=transpose) + + result = obj + other + tm.assert_equal(result, expected) + result = other + obj + tm.assert_equal(result, expected) + result = obj - other + tm.assert_equal(result, expected) + msg = r"cannot subtract .* from .*" + with pytest.raises(TypeError, match=msg): + other - obj + + @pytest.mark.parametrize( + "other", + [ + np.array(["NaT"] * 9, dtype="m8[ns]"), + TimedeltaArray._from_sequence(["NaT"] * 9, dtype="m8[ns]"), + ], + ) + def test_parr_add_sub_tdt64_nat_array(self, box_with_array, other): + pi = period_range("1994-04-01", periods=9, freq="19D") + expected = PeriodIndex(["NaT"] * 9, freq="19D") + + obj = tm.box_expected(pi, box_with_array) + expected = tm.box_expected(expected, box_with_array) + + result = obj + other + tm.assert_equal(result, expected) + result = other + obj + tm.assert_equal(result, expected) + result = obj - other + tm.assert_equal(result, expected) + msg = r"cannot subtract .* from .*" + with pytest.raises(TypeError, match=msg): + other - obj + + # some but not *all* NaT + other = other.copy() + other[0] = np.timedelta64(0, "ns") + expected = PeriodIndex([pi[0]] + ["NaT"] * 8, freq="19D") + expected = tm.box_expected(expected, box_with_array) + + result = obj + other + tm.assert_equal(result, expected) + result = other + obj + tm.assert_equal(result, expected) + result = obj - other + tm.assert_equal(result, expected) + with pytest.raises(TypeError, match=msg): + other - obj + + # --------------------------------------------------------------- + # Unsorted + + def test_parr_add_sub_index(self): + # Check that PeriodArray defers to Index on arithmetic ops + pi = period_range("2000-12-31", periods=3) + parr = pi.array + + result = parr - pi + expected = pi - pi + tm.assert_index_equal(result, expected) + + def test_parr_add_sub_object_array(self): + pi = period_range("2000-12-31", periods=3, freq="D") + parr = pi.array + + other = np.array([Timedelta(days=1), pd.offsets.Day(2), 3]) + + with tm.assert_produces_warning(PerformanceWarning): + result = parr + other + + expected = PeriodIndex( + ["2001-01-01", "2001-01-03", "2001-01-05"], freq="D" + )._data.astype(object) + tm.assert_equal(result, expected) + + with tm.assert_produces_warning(PerformanceWarning): + result = parr - other + + expected = PeriodIndex(["2000-12-30"] * 3, freq="D")._data.astype(object) + tm.assert_equal(result, expected) + + def test_period_add_timestamp_raises(self, box_with_array): + # GH#17983 + ts = Timestamp("2017") + per = Period("2017", freq="M") + + arr = pd.Index([per], dtype="Period[M]") + arr = tm.box_expected(arr, box_with_array) + + msg = "cannot add PeriodArray and Timestamp" + with pytest.raises(TypeError, match=msg): + arr + ts + with pytest.raises(TypeError, match=msg): + ts + arr + msg = "cannot add PeriodArray and DatetimeArray" + with pytest.raises(TypeError, match=msg): + arr + Series([ts]) + with pytest.raises(TypeError, match=msg): + Series([ts]) + arr + with pytest.raises(TypeError, match=msg): + arr + pd.Index([ts]) + with pytest.raises(TypeError, match=msg): + pd.Index([ts]) + arr + + if box_with_array is pd.DataFrame: + msg = "cannot add PeriodArray and DatetimeArray" + else: + msg = r"unsupported operand type\(s\) for \+: 'Period' and 'DatetimeArray" + with pytest.raises(TypeError, match=msg): + arr + pd.DataFrame([ts]) + if box_with_array is pd.DataFrame: + msg = "cannot add PeriodArray and DatetimeArray" + else: + msg = r"unsupported operand type\(s\) for \+: 'DatetimeArray' and 'Period'" + with pytest.raises(TypeError, match=msg): + pd.DataFrame([ts]) + arr + + +class TestPeriodSeriesArithmetic: + def test_parr_add_timedeltalike_scalar(self, three_days, box_with_array): + # GH#13043 + ser = Series( + [Period("2015-01-01", freq="D"), Period("2015-01-02", freq="D")], + name="xxx", + ) + assert ser.dtype == "Period[D]" + + expected = Series( + [Period("2015-01-04", freq="D"), Period("2015-01-05", freq="D")], + name="xxx", + ) + + obj = tm.box_expected(ser, box_with_array) + if box_with_array is pd.DataFrame: + assert (obj.dtypes == "Period[D]").all() + + expected = tm.box_expected(expected, box_with_array) + + result = obj + three_days + tm.assert_equal(result, expected) + + result = three_days + obj + tm.assert_equal(result, expected) + + def test_ops_series_period(self): + # GH#13043 + ser = Series( + [Period("2015-01-01", freq="D"), Period("2015-01-02", freq="D")], + name="xxx", + ) + assert ser.dtype == "Period[D]" + + per = Period("2015-01-10", freq="D") + off = per.freq + # dtype will be object because of original dtype + expected = Series([9 * off, 8 * off], name="xxx", dtype=object) + tm.assert_series_equal(per - ser, expected) + tm.assert_series_equal(ser - per, -1 * expected) + + s2 = Series( + [Period("2015-01-05", freq="D"), Period("2015-01-04", freq="D")], + name="xxx", + ) + assert s2.dtype == "Period[D]" + + expected = Series([4 * off, 2 * off], name="xxx", dtype=object) + tm.assert_series_equal(s2 - ser, expected) + tm.assert_series_equal(ser - s2, -1 * expected) + + +class TestPeriodIndexSeriesMethods: + """Test PeriodIndex and Period Series Ops consistency""" + + def _check(self, values, func, expected): + idx = PeriodIndex(values) + result = func(idx) + tm.assert_equal(result, expected) + + ser = Series(values) + result = func(ser) + + exp = Series(expected, name=values.name) + tm.assert_series_equal(result, exp) + + def test_pi_ops(self): + idx = PeriodIndex( + ["2011-01", "2011-02", "2011-03", "2011-04"], freq="M", name="idx" + ) + + expected = PeriodIndex( + ["2011-03", "2011-04", "2011-05", "2011-06"], freq="M", name="idx" + ) + + self._check(idx, lambda x: x + 2, expected) + self._check(idx, lambda x: 2 + x, expected) + + self._check(idx + 2, lambda x: x - 2, idx) + + result = idx - Period("2011-01", freq="M") + off = idx.freq + exp = pd.Index([0 * off, 1 * off, 2 * off, 3 * off], name="idx") + tm.assert_index_equal(result, exp) + + result = Period("2011-01", freq="M") - idx + exp = pd.Index([0 * off, -1 * off, -2 * off, -3 * off], name="idx") + tm.assert_index_equal(result, exp) + + @pytest.mark.parametrize("ng", ["str", 1.5]) + @pytest.mark.parametrize( + "func", + [ + lambda obj, ng: obj + ng, + lambda obj, ng: ng + obj, + lambda obj, ng: obj - ng, + lambda obj, ng: ng - obj, + lambda obj, ng: np.add(obj, ng), + lambda obj, ng: np.add(ng, obj), + lambda obj, ng: np.subtract(obj, ng), + lambda obj, ng: np.subtract(ng, obj), + ], + ) + def test_parr_ops_errors(self, ng, func, box_with_array): + idx = PeriodIndex( + ["2011-01", "2011-02", "2011-03", "2011-04"], freq="M", name="idx" + ) + obj = tm.box_expected(idx, box_with_array) + msg = "|".join( + [ + r"unsupported operand type\(s\)", + "can only concatenate", + r"must be str", + "object to str implicitly", + ] + ) + + with pytest.raises(TypeError, match=msg): + func(obj, ng) + + def test_pi_ops_nat(self): + idx = PeriodIndex( + ["2011-01", "2011-02", "NaT", "2011-04"], freq="M", name="idx" + ) + expected = PeriodIndex( + ["2011-03", "2011-04", "NaT", "2011-06"], freq="M", name="idx" + ) + + self._check(idx, lambda x: x + 2, expected) + self._check(idx, lambda x: 2 + x, expected) + self._check(idx, lambda x: np.add(x, 2), expected) + + self._check(idx + 2, lambda x: x - 2, idx) + self._check(idx + 2, lambda x: np.subtract(x, 2), idx) + + # freq with mult + idx = PeriodIndex( + ["2011-01", "2011-02", "NaT", "2011-04"], freq="2M", name="idx" + ) + expected = PeriodIndex( + ["2011-07", "2011-08", "NaT", "2011-10"], freq="2M", name="idx" + ) + + self._check(idx, lambda x: x + 3, expected) + self._check(idx, lambda x: 3 + x, expected) + self._check(idx, lambda x: np.add(x, 3), expected) + + self._check(idx + 3, lambda x: x - 3, idx) + self._check(idx + 3, lambda x: np.subtract(x, 3), idx) + + def test_pi_ops_array_int(self): + idx = PeriodIndex( + ["2011-01", "2011-02", "NaT", "2011-04"], freq="M", name="idx" + ) + f = lambda x: x + np.array([1, 2, 3, 4]) + exp = PeriodIndex( + ["2011-02", "2011-04", "NaT", "2011-08"], freq="M", name="idx" + ) + self._check(idx, f, exp) + + f = lambda x: np.add(x, np.array([4, -1, 1, 2])) + exp = PeriodIndex( + ["2011-05", "2011-01", "NaT", "2011-06"], freq="M", name="idx" + ) + self._check(idx, f, exp) + + f = lambda x: x - np.array([1, 2, 3, 4]) + exp = PeriodIndex( + ["2010-12", "2010-12", "NaT", "2010-12"], freq="M", name="idx" + ) + self._check(idx, f, exp) + + f = lambda x: np.subtract(x, np.array([3, 2, 3, -2])) + exp = PeriodIndex( + ["2010-10", "2010-12", "NaT", "2011-06"], freq="M", name="idx" + ) + self._check(idx, f, exp) + + def test_pi_ops_offset(self): + idx = PeriodIndex( + ["2011-01-01", "2011-02-01", "2011-03-01", "2011-04-01"], + freq="D", + name="idx", + ) + f = lambda x: x + pd.offsets.Day() + exp = PeriodIndex( + ["2011-01-02", "2011-02-02", "2011-03-02", "2011-04-02"], + freq="D", + name="idx", + ) + self._check(idx, f, exp) + + f = lambda x: x + pd.offsets.Day(2) + exp = PeriodIndex( + ["2011-01-03", "2011-02-03", "2011-03-03", "2011-04-03"], + freq="D", + name="idx", + ) + self._check(idx, f, exp) + + f = lambda x: x - pd.offsets.Day(2) + exp = PeriodIndex( + ["2010-12-30", "2011-01-30", "2011-02-27", "2011-03-30"], + freq="D", + name="idx", + ) + self._check(idx, f, exp) + + def test_pi_offset_errors(self): + idx = PeriodIndex( + ["2011-01-01", "2011-02-01", "2011-03-01", "2011-04-01"], + freq="D", + name="idx", + ) + ser = Series(idx) + + msg = ( + "Cannot add/subtract timedelta-like from PeriodArray that is not " + "an integer multiple of the PeriodArray's freq" + ) + for obj in [idx, ser]: + with pytest.raises(IncompatibleFrequency, match=msg): + obj + pd.offsets.Hour(2) + + with pytest.raises(IncompatibleFrequency, match=msg): + pd.offsets.Hour(2) + obj + + with pytest.raises(IncompatibleFrequency, match=msg): + obj - pd.offsets.Hour(2) + + def test_pi_sub_period(self): + # GH#13071 + idx = PeriodIndex( + ["2011-01", "2011-02", "2011-03", "2011-04"], freq="M", name="idx" + ) + + result = idx - Period("2012-01", freq="M") + off = idx.freq + exp = pd.Index([-12 * off, -11 * off, -10 * off, -9 * off], name="idx") + tm.assert_index_equal(result, exp) + + result = np.subtract(idx, Period("2012-01", freq="M")) + tm.assert_index_equal(result, exp) + + result = Period("2012-01", freq="M") - idx + exp = pd.Index([12 * off, 11 * off, 10 * off, 9 * off], name="idx") + tm.assert_index_equal(result, exp) + + result = np.subtract(Period("2012-01", freq="M"), idx) + tm.assert_index_equal(result, exp) + + exp = TimedeltaIndex([np.nan, np.nan, np.nan, np.nan], name="idx") + result = idx - Period("NaT", freq="M") + tm.assert_index_equal(result, exp) + assert result.freq == exp.freq + + result = Period("NaT", freq="M") - idx + tm.assert_index_equal(result, exp) + assert result.freq == exp.freq + + def test_pi_sub_pdnat(self): + # GH#13071, GH#19389 + idx = PeriodIndex( + ["2011-01", "2011-02", "NaT", "2011-04"], freq="M", name="idx" + ) + exp = TimedeltaIndex([pd.NaT] * 4, name="idx") + tm.assert_index_equal(pd.NaT - idx, exp) + tm.assert_index_equal(idx - pd.NaT, exp) + + def test_pi_sub_period_nat(self): + # GH#13071 + idx = PeriodIndex( + ["2011-01", "NaT", "2011-03", "2011-04"], freq="M", name="idx" + ) + + result = idx - Period("2012-01", freq="M") + off = idx.freq + exp = pd.Index([-12 * off, pd.NaT, -10 * off, -9 * off], name="idx") + tm.assert_index_equal(result, exp) + + result = Period("2012-01", freq="M") - idx + exp = pd.Index([12 * off, pd.NaT, 10 * off, 9 * off], name="idx") + tm.assert_index_equal(result, exp) + + exp = TimedeltaIndex([np.nan, np.nan, np.nan, np.nan], name="idx") + tm.assert_index_equal(idx - Period("NaT", freq="M"), exp) + tm.assert_index_equal(Period("NaT", freq="M") - idx, exp) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/test_timedelta64.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/test_timedelta64.py new file mode 100644 index 0000000000000000000000000000000000000000..d02e827d435cf16c806b5130f5949143f51c15e3 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arithmetic/test_timedelta64.py @@ -0,0 +1,2179 @@ +# Arithmetic tests for DataFrame/Series/Index/Array classes that should +# behave identically. +from datetime import ( + datetime, + timedelta, +) + +import numpy as np +import pytest + +from pandas.errors import ( + OutOfBoundsDatetime, + PerformanceWarning, +) + +import pandas as pd +from pandas import ( + DataFrame, + DatetimeIndex, + Index, + NaT, + Series, + Timedelta, + TimedeltaIndex, + Timestamp, + offsets, + timedelta_range, +) +import pandas._testing as tm +from pandas.core.arrays import NumpyExtensionArray +from pandas.tests.arithmetic.common import ( + assert_invalid_addsub_type, + assert_invalid_comparison, + get_upcast_box, +) + + +def assert_dtype(obj, expected_dtype): + """ + Helper to check the dtype for a Series, Index, or single-column DataFrame. + """ + dtype = tm.get_dtype(obj) + + assert dtype == expected_dtype + + +def get_expected_name(box, names): + if box is DataFrame: + # Since we are operating with a DataFrame and a non-DataFrame, + # the non-DataFrame is cast to Series and its name ignored. + exname = names[0] + elif box in [tm.to_array, pd.array]: + exname = names[1] + else: + exname = names[2] + return exname + + +# ------------------------------------------------------------------ +# Timedelta64[ns] dtype Comparisons + + +class TestTimedelta64ArrayLikeComparisons: + # Comparison tests for timedelta64[ns] vectors fully parametrized over + # DataFrame/Series/TimedeltaIndex/TimedeltaArray. Ideally all comparison + # tests will eventually end up here. + + def test_compare_timedelta64_zerodim(self, box_with_array): + # GH#26689 should unbox when comparing with zerodim array + box = box_with_array + xbox = box_with_array if box_with_array not in [Index, pd.array] else np.ndarray + + tdi = timedelta_range("2h", periods=4) + other = np.array(tdi.to_numpy()[0]) + + tdi = tm.box_expected(tdi, box) + res = tdi <= other + expected = np.array([True, False, False, False]) + expected = tm.box_expected(expected, xbox) + tm.assert_equal(res, expected) + + @pytest.mark.parametrize( + "td_scalar", + [ + timedelta(days=1), + Timedelta(days=1), + Timedelta(days=1).to_timedelta64(), + offsets.Hour(24), + ], + ) + def test_compare_timedeltalike_scalar(self, box_with_array, td_scalar): + # regression test for GH#5963 + box = box_with_array + xbox = box if box not in [Index, pd.array] else np.ndarray + + ser = Series([timedelta(days=1), timedelta(days=2)]) + ser = tm.box_expected(ser, box) + actual = ser > td_scalar + expected = Series([False, True]) + expected = tm.box_expected(expected, xbox) + tm.assert_equal(actual, expected) + + @pytest.mark.parametrize( + "invalid", + [ + 345600000000000, + "a", + Timestamp("2021-01-01"), + Timestamp("2021-01-01").now("UTC"), + Timestamp("2021-01-01").now().to_datetime64(), + Timestamp("2021-01-01").now().to_pydatetime(), + Timestamp("2021-01-01").date(), + np.array(4), # zero-dim mismatched dtype + ], + ) + def test_td64_comparisons_invalid(self, box_with_array, invalid): + # GH#13624 for str + box = box_with_array + + rng = timedelta_range("1 days", periods=10) + obj = tm.box_expected(rng, box) + + assert_invalid_comparison(obj, invalid, box) + + @pytest.mark.parametrize( + "other", + [ + list(range(10)), + np.arange(10), + np.arange(10).astype(np.float32), + np.arange(10).astype(object), + pd.date_range("1970-01-01", periods=10, tz="UTC").array, + np.array(pd.date_range("1970-01-01", periods=10)), + list(pd.date_range("1970-01-01", periods=10)), + pd.date_range("1970-01-01", periods=10).astype(object), + pd.period_range("1971-01-01", freq="D", periods=10).array, + pd.period_range("1971-01-01", freq="D", periods=10).astype(object), + ], + ) + def test_td64arr_cmp_arraylike_invalid(self, other, box_with_array): + # We don't parametrize this over box_with_array because listlike + # other plays poorly with assert_invalid_comparison reversed checks + + rng = timedelta_range("1 days", periods=10)._data + rng = tm.box_expected(rng, box_with_array) + assert_invalid_comparison(rng, other, box_with_array) + + def test_td64arr_cmp_mixed_invalid(self): + rng = timedelta_range("1 days", periods=5)._data + other = np.array([0, 1, 2, rng[3], Timestamp("2021-01-01")]) + + result = rng == other + expected = np.array([False, False, False, True, False]) + tm.assert_numpy_array_equal(result, expected) + + result = rng != other + tm.assert_numpy_array_equal(result, ~expected) + + msg = "Invalid comparison between|Cannot compare type|not supported between" + with pytest.raises(TypeError, match=msg): + rng < other + with pytest.raises(TypeError, match=msg): + rng > other + with pytest.raises(TypeError, match=msg): + rng <= other + with pytest.raises(TypeError, match=msg): + rng >= other + + +class TestTimedelta64ArrayComparisons: + # TODO: All of these need to be parametrized over box + + @pytest.mark.parametrize("dtype", [None, object]) + def test_comp_nat(self, dtype): + left = TimedeltaIndex([Timedelta("1 days"), NaT, Timedelta("3 days")]) + right = TimedeltaIndex([NaT, NaT, Timedelta("3 days")]) + + lhs, rhs = left, right + if dtype is object: + lhs, rhs = left.astype(object), right.astype(object) + + result = rhs == lhs + expected = np.array([False, False, True]) + tm.assert_numpy_array_equal(result, expected) + + result = rhs != lhs + expected = np.array([True, True, False]) + tm.assert_numpy_array_equal(result, expected) + + expected = np.array([False, False, False]) + tm.assert_numpy_array_equal(lhs == NaT, expected) + tm.assert_numpy_array_equal(NaT == rhs, expected) + + expected = np.array([True, True, True]) + tm.assert_numpy_array_equal(lhs != NaT, expected) + tm.assert_numpy_array_equal(NaT != lhs, expected) + + expected = np.array([False, False, False]) + tm.assert_numpy_array_equal(lhs < NaT, expected) + tm.assert_numpy_array_equal(NaT > lhs, expected) + + @pytest.mark.parametrize( + "idx2", + [ + TimedeltaIndex( + ["2 day", "2 day", NaT, NaT, "1 day 00:00:02", "5 days 00:00:03"] + ), + np.array( + [ + np.timedelta64(2, "D"), + np.timedelta64(2, "D"), + np.timedelta64("nat"), + np.timedelta64("nat"), + np.timedelta64(1, "D") + np.timedelta64(2, "s"), + np.timedelta64(5, "D") + np.timedelta64(3, "s"), + ] + ), + ], + ) + def test_comparisons_nat(self, idx2): + idx1 = TimedeltaIndex( + [ + "1 day", + NaT, + "1 day 00:00:01", + NaT, + "1 day 00:00:01", + "5 day 00:00:03", + ] + ) + # Check pd.NaT is handles as the same as np.nan + result = idx1 < idx2 + expected = np.array([True, False, False, False, True, False]) + tm.assert_numpy_array_equal(result, expected) + + result = idx2 > idx1 + expected = np.array([True, False, False, False, True, False]) + tm.assert_numpy_array_equal(result, expected) + + result = idx1 <= idx2 + expected = np.array([True, False, False, False, True, True]) + tm.assert_numpy_array_equal(result, expected) + + result = idx2 >= idx1 + expected = np.array([True, False, False, False, True, True]) + tm.assert_numpy_array_equal(result, expected) + + result = idx1 == idx2 + expected = np.array([False, False, False, False, False, True]) + tm.assert_numpy_array_equal(result, expected) + + result = idx1 != idx2 + expected = np.array([True, True, True, True, True, False]) + tm.assert_numpy_array_equal(result, expected) + + # TODO: better name + def test_comparisons_coverage(self): + rng = timedelta_range("1 days", periods=10) + + result = rng < rng[3] + expected = np.array([True, True, True] + [False] * 7) + tm.assert_numpy_array_equal(result, expected) + + result = rng == list(rng) + exp = rng == rng + tm.assert_numpy_array_equal(result, exp) + + +# ------------------------------------------------------------------ +# Timedelta64[ns] dtype Arithmetic Operations + + +class TestTimedelta64ArithmeticUnsorted: + # Tests moved from type-specific test files but not + # yet sorted/parametrized/de-duplicated + + def test_ufunc_coercions(self): + # normal ops are also tested in tseries/test_timedeltas.py + idx = TimedeltaIndex(["2h", "4h", "6h", "8h", "10h"], freq="2h", name="x") + + for result in [idx * 2, np.multiply(idx, 2)]: + assert isinstance(result, TimedeltaIndex) + exp = TimedeltaIndex(["4h", "8h", "12h", "16h", "20h"], freq="4h", name="x") + tm.assert_index_equal(result, exp) + assert result.freq == "4h" + + for result in [idx / 2, np.divide(idx, 2)]: + assert isinstance(result, TimedeltaIndex) + exp = TimedeltaIndex(["1h", "2h", "3h", "4h", "5h"], freq="h", name="x") + tm.assert_index_equal(result, exp) + assert result.freq == "h" + + for result in [-idx, np.negative(idx)]: + assert isinstance(result, TimedeltaIndex) + exp = TimedeltaIndex( + ["-2h", "-4h", "-6h", "-8h", "-10h"], freq="-2h", name="x" + ) + tm.assert_index_equal(result, exp) + assert result.freq == "-2h" + + idx = TimedeltaIndex(["-2h", "-1h", "0h", "1h", "2h"], freq="h", name="x") + for result in [abs(idx), np.absolute(idx)]: + assert isinstance(result, TimedeltaIndex) + exp = TimedeltaIndex(["2h", "1h", "0h", "1h", "2h"], freq=None, name="x") + tm.assert_index_equal(result, exp) + assert result.freq is None + + def test_subtraction_ops(self): + # with datetimes/timedelta and tdi/dti + tdi = TimedeltaIndex(["1 days", NaT, "2 days"], name="foo") + dti = pd.date_range("20130101", periods=3, name="bar") + td = Timedelta("1 days") + dt = Timestamp("20130101") + + msg = "cannot subtract a datelike from a TimedeltaArray" + with pytest.raises(TypeError, match=msg): + tdi - dt + with pytest.raises(TypeError, match=msg): + tdi - dti + + msg = r"unsupported operand type\(s\) for -" + with pytest.raises(TypeError, match=msg): + td - dt + + msg = "(bad|unsupported) operand type for unary" + with pytest.raises(TypeError, match=msg): + td - dti + + result = dt - dti + expected = TimedeltaIndex(["0 days", "-1 days", "-2 days"], name="bar") + tm.assert_index_equal(result, expected) + + result = dti - dt + expected = TimedeltaIndex(["0 days", "1 days", "2 days"], name="bar") + tm.assert_index_equal(result, expected) + + result = tdi - td + expected = TimedeltaIndex(["0 days", NaT, "1 days"], name="foo") + tm.assert_index_equal(result, expected) + + result = td - tdi + expected = TimedeltaIndex(["0 days", NaT, "-1 days"], name="foo") + tm.assert_index_equal(result, expected) + + result = dti - td + expected = DatetimeIndex( + ["20121231", "20130101", "20130102"], dtype="M8[ns]", freq="D", name="bar" + ) + tm.assert_index_equal(result, expected) + + result = dt - tdi + expected = DatetimeIndex( + ["20121231", NaT, "20121230"], dtype="M8[ns]", name="foo" + ) + tm.assert_index_equal(result, expected) + + def test_subtraction_ops_with_tz(self, box_with_array): + # check that dt/dti subtraction ops with tz are validated + dti = pd.date_range("20130101", periods=3) + dti = tm.box_expected(dti, box_with_array) + ts = Timestamp("20130101") + dt = ts.to_pydatetime() + dti_tz = pd.date_range("20130101", periods=3).tz_localize("US/Eastern") + dti_tz = tm.box_expected(dti_tz, box_with_array) + ts_tz = Timestamp("20130101").tz_localize("US/Eastern") + ts_tz2 = Timestamp("20130101").tz_localize("CET") + dt_tz = ts_tz.to_pydatetime() + td = Timedelta("1 days") + + def _check(result, expected): + assert result == expected + assert isinstance(result, Timedelta) + + # scalars + result = ts - ts + expected = Timedelta("0 days") + _check(result, expected) + + result = dt_tz - ts_tz + expected = Timedelta("0 days") + _check(result, expected) + + result = ts_tz - dt_tz + expected = Timedelta("0 days") + _check(result, expected) + + # tz mismatches + msg = "Cannot subtract tz-naive and tz-aware datetime-like objects." + with pytest.raises(TypeError, match=msg): + dt_tz - ts + msg = "can't subtract offset-naive and offset-aware datetimes" + with pytest.raises(TypeError, match=msg): + dt_tz - dt + msg = "can't subtract offset-naive and offset-aware datetimes" + with pytest.raises(TypeError, match=msg): + dt - dt_tz + msg = "Cannot subtract tz-naive and tz-aware datetime-like objects." + with pytest.raises(TypeError, match=msg): + ts - dt_tz + with pytest.raises(TypeError, match=msg): + ts_tz2 - ts + with pytest.raises(TypeError, match=msg): + ts_tz2 - dt + + msg = "Cannot subtract tz-naive and tz-aware" + # with dti + with pytest.raises(TypeError, match=msg): + dti - ts_tz + with pytest.raises(TypeError, match=msg): + dti_tz - ts + + result = dti_tz - dt_tz + expected = TimedeltaIndex(["0 days", "1 days", "2 days"]) + expected = tm.box_expected(expected, box_with_array) + tm.assert_equal(result, expected) + + result = dt_tz - dti_tz + expected = TimedeltaIndex(["0 days", "-1 days", "-2 days"]) + expected = tm.box_expected(expected, box_with_array) + tm.assert_equal(result, expected) + + result = dti_tz - ts_tz + expected = TimedeltaIndex(["0 days", "1 days", "2 days"]) + expected = tm.box_expected(expected, box_with_array) + tm.assert_equal(result, expected) + + result = ts_tz - dti_tz + expected = TimedeltaIndex(["0 days", "-1 days", "-2 days"]) + expected = tm.box_expected(expected, box_with_array) + tm.assert_equal(result, expected) + + result = td - td + expected = Timedelta("0 days") + _check(result, expected) + + result = dti_tz - td + expected = DatetimeIndex( + ["20121231", "20130101", "20130102"], tz="US/Eastern" + ).as_unit("ns") + expected = tm.box_expected(expected, box_with_array) + tm.assert_equal(result, expected) + + def test_dti_tdi_numeric_ops(self): + # These are normally union/diff set-like ops + tdi = TimedeltaIndex(["1 days", NaT, "2 days"], name="foo") + dti = pd.date_range("20130101", periods=3, name="bar") + + result = tdi - tdi + expected = TimedeltaIndex(["0 days", NaT, "0 days"], name="foo") + tm.assert_index_equal(result, expected) + + result = tdi + tdi + expected = TimedeltaIndex(["2 days", NaT, "4 days"], name="foo") + tm.assert_index_equal(result, expected) + + result = dti - tdi # name will be reset + expected = DatetimeIndex(["20121231", NaT, "20130101"], dtype="M8[ns]") + tm.assert_index_equal(result, expected) + + def test_addition_ops(self): + # with datetimes/timedelta and tdi/dti + tdi = TimedeltaIndex(["1 days", NaT, "2 days"], name="foo") + dti = pd.date_range("20130101", periods=3, name="bar") + td = Timedelta("1 days") + dt = Timestamp("20130101") + + result = tdi + dt + expected = DatetimeIndex( + ["20130102", NaT, "20130103"], dtype="M8[ns]", name="foo" + ) + tm.assert_index_equal(result, expected) + + result = dt + tdi + expected = DatetimeIndex( + ["20130102", NaT, "20130103"], dtype="M8[ns]", name="foo" + ) + tm.assert_index_equal(result, expected) + + result = td + tdi + expected = TimedeltaIndex(["2 days", NaT, "3 days"], name="foo") + tm.assert_index_equal(result, expected) + + result = tdi + td + expected = TimedeltaIndex(["2 days", NaT, "3 days"], name="foo") + tm.assert_index_equal(result, expected) + + # unequal length + msg = "cannot add indices of unequal length" + with pytest.raises(ValueError, match=msg): + tdi + dti[0:1] + with pytest.raises(ValueError, match=msg): + tdi[0:1] + dti + + # random indexes + msg = "Addition/subtraction of integers and integer-arrays" + with pytest.raises(TypeError, match=msg): + tdi + Index([1, 2, 3], dtype=np.int64) + + # this is a union! + # FIXME: don't leave commented-out + # pytest.raises(TypeError, lambda : Index([1,2,3]) + tdi) + + result = tdi + dti # name will be reset + expected = DatetimeIndex(["20130102", NaT, "20130105"], dtype="M8[ns]") + tm.assert_index_equal(result, expected) + + result = dti + tdi # name will be reset + expected = DatetimeIndex(["20130102", NaT, "20130105"], dtype="M8[ns]") + tm.assert_index_equal(result, expected) + + result = dt + td + expected = Timestamp("20130102") + assert result == expected + + result = td + dt + expected = Timestamp("20130102") + assert result == expected + + # TODO: Needs more informative name, probably split up into + # more targeted tests + @pytest.mark.parametrize("freq", ["D", "B"]) + def test_timedelta(self, freq): + index = pd.date_range("1/1/2000", periods=50, freq=freq) + + shifted = index + timedelta(1) + back = shifted + timedelta(-1) + back = back._with_freq("infer") + tm.assert_index_equal(index, back) + + if freq == "D": + expected = pd.tseries.offsets.Day(1) + assert index.freq == expected + assert shifted.freq == expected + assert back.freq == expected + else: # freq == 'B' + assert index.freq == pd.tseries.offsets.BusinessDay(1) + assert shifted.freq is None + assert back.freq == pd.tseries.offsets.BusinessDay(1) + + result = index - timedelta(1) + expected = index + timedelta(-1) + tm.assert_index_equal(result, expected) + + def test_timedelta_tick_arithmetic(self): + # GH#4134, buggy with timedeltas + rng = pd.date_range("2013", "2014") + s = Series(rng) + result1 = rng - offsets.Hour(1) + result2 = DatetimeIndex(s - np.timedelta64(100000000)) + result3 = rng - np.timedelta64(100000000) + result4 = DatetimeIndex(s - offsets.Hour(1)) + + assert result1.freq == rng.freq + result1 = result1._with_freq(None) + tm.assert_index_equal(result1, result4) + + assert result3.freq == rng.freq + result3 = result3._with_freq(None) + tm.assert_index_equal(result2, result3) + + def test_tda_add_sub_index(self): + # Check that TimedeltaArray defers to Index on arithmetic ops + tdi = TimedeltaIndex(["1 days", NaT, "2 days"]) + tda = tdi.array + + dti = pd.date_range("1999-12-31", periods=3, freq="D") + + result = tda + dti + expected = tdi + dti + tm.assert_index_equal(result, expected) + + result = tda + tdi + expected = tdi + tdi + tm.assert_index_equal(result, expected) + + result = tda - tdi + expected = tdi - tdi + tm.assert_index_equal(result, expected) + + def test_tda_add_dt64_object_array(self, box_with_array, tz_naive_fixture): + # Result should be cast back to DatetimeArray + box = box_with_array + + dti = pd.date_range("2016-01-01", periods=3, tz=tz_naive_fixture) + dti = dti._with_freq(None) + tdi = dti - dti + + obj = tm.box_expected(tdi, box) + other = tm.box_expected(dti, box) + + with tm.assert_produces_warning(PerformanceWarning): + result = obj + other.astype(object) + tm.assert_equal(result, other.astype(object)) + + # ------------------------------------------------------------- + # Binary operations TimedeltaIndex and timedelta-like + + def test_tdi_iadd_timedeltalike(self, two_hours, box_with_array): + # only test adding/sub offsets as + is now numeric + rng = timedelta_range("1 days", "10 days") + expected = timedelta_range("1 days 02:00:00", "10 days 02:00:00", freq="D") + + rng = tm.box_expected(rng, box_with_array) + expected = tm.box_expected(expected, box_with_array) + + orig_rng = rng + rng += two_hours + tm.assert_equal(rng, expected) + if box_with_array is not Index: + # Check that operation is actually inplace + tm.assert_equal(orig_rng, expected) + + def test_tdi_isub_timedeltalike(self, two_hours, box_with_array): + # only test adding/sub offsets as - is now numeric + rng = timedelta_range("1 days", "10 days") + expected = timedelta_range("0 days 22:00:00", "9 days 22:00:00") + + rng = tm.box_expected(rng, box_with_array) + expected = tm.box_expected(expected, box_with_array) + + orig_rng = rng + rng -= two_hours + tm.assert_equal(rng, expected) + if box_with_array is not Index: + # Check that operation is actually inplace + tm.assert_equal(orig_rng, expected) + + # ------------------------------------------------------------- + + def test_tdi_ops_attributes(self): + rng = timedelta_range("2 days", periods=5, freq="2D", name="x") + + result = rng + 1 * rng.freq + exp = timedelta_range("4 days", periods=5, freq="2D", name="x") + tm.assert_index_equal(result, exp) + assert result.freq == "2D" + + result = rng - 2 * rng.freq + exp = timedelta_range("-2 days", periods=5, freq="2D", name="x") + tm.assert_index_equal(result, exp) + assert result.freq == "2D" + + result = rng * 2 + exp = timedelta_range("4 days", periods=5, freq="4D", name="x") + tm.assert_index_equal(result, exp) + assert result.freq == "4D" + + result = rng / 2 + exp = timedelta_range("1 days", periods=5, freq="D", name="x") + tm.assert_index_equal(result, exp) + assert result.freq == "D" + + result = -rng + exp = timedelta_range("-2 days", periods=5, freq="-2D", name="x") + tm.assert_index_equal(result, exp) + assert result.freq == "-2D" + + rng = timedelta_range("-2 days", periods=5, freq="D", name="x") + + result = abs(rng) + exp = TimedeltaIndex( + ["2 days", "1 days", "0 days", "1 days", "2 days"], name="x" + ) + tm.assert_index_equal(result, exp) + assert result.freq is None + + +class TestAddSubNaTMasking: + # TODO: parametrize over boxes + + @pytest.mark.parametrize("str_ts", ["1950-01-01", "1980-01-01"]) + def test_tdarr_add_timestamp_nat_masking(self, box_with_array, str_ts): + # GH#17991 checking for overflow-masking with NaT + tdinat = pd.to_timedelta(["24658 days 11:15:00", "NaT"]) + tdobj = tm.box_expected(tdinat, box_with_array) + + ts = Timestamp(str_ts) + ts_variants = [ + ts, + ts.to_pydatetime(), + ts.to_datetime64().astype("datetime64[ns]"), + ts.to_datetime64().astype("datetime64[D]"), + ] + + for variant in ts_variants: + res = tdobj + variant + if box_with_array is DataFrame: + assert res.iloc[1, 1] is NaT + else: + assert res[1] is NaT + + def test_tdi_add_overflow(self): + # See GH#14068 + # preliminary test scalar analogue of vectorized tests below + # TODO: Make raised error message more informative and test + with pytest.raises(OutOfBoundsDatetime, match="10155196800000000000"): + pd.to_timedelta(106580, "D") + Timestamp("2000") + with pytest.raises(OutOfBoundsDatetime, match="10155196800000000000"): + Timestamp("2000") + pd.to_timedelta(106580, "D") + + _NaT = NaT._value + 1 + msg = "Overflow in int64 addition" + with pytest.raises(OverflowError, match=msg): + pd.to_timedelta([106580], "D") + Timestamp("2000") + with pytest.raises(OverflowError, match=msg): + Timestamp("2000") + pd.to_timedelta([106580], "D") + with pytest.raises(OverflowError, match=msg): + pd.to_timedelta([_NaT]) - Timedelta("1 days") + with pytest.raises(OverflowError, match=msg): + pd.to_timedelta(["5 days", _NaT]) - Timedelta("1 days") + with pytest.raises(OverflowError, match=msg): + ( + pd.to_timedelta([_NaT, "5 days", "1 hours"]) + - pd.to_timedelta(["7 seconds", _NaT, "4 hours"]) + ) + + # These should not overflow! + exp = TimedeltaIndex([NaT]) + result = pd.to_timedelta([NaT]) - Timedelta("1 days") + tm.assert_index_equal(result, exp) + + exp = TimedeltaIndex(["4 days", NaT]) + result = pd.to_timedelta(["5 days", NaT]) - Timedelta("1 days") + tm.assert_index_equal(result, exp) + + exp = TimedeltaIndex([NaT, NaT, "5 hours"]) + result = pd.to_timedelta([NaT, "5 days", "1 hours"]) + pd.to_timedelta( + ["7 seconds", NaT, "4 hours"] + ) + tm.assert_index_equal(result, exp) + + +class TestTimedeltaArraylikeAddSubOps: + # Tests for timedelta64[ns] __add__, __sub__, __radd__, __rsub__ + + def test_sub_nat_retain_unit(self): + ser = pd.to_timedelta(Series(["00:00:01"])).astype("m8[s]") + + result = ser - NaT + expected = Series([NaT], dtype="m8[s]") + tm.assert_series_equal(result, expected) + + # TODO: moved from tests.indexes.timedeltas.test_arithmetic; needs + # parametrization+de-duplication + def test_timedelta_ops_with_missing_values(self): + # setup + s1 = pd.to_timedelta(Series(["00:00:01"])) + s2 = pd.to_timedelta(Series(["00:00:02"])) + + sn = pd.to_timedelta(Series([NaT], dtype="m8[ns]")) + + df1 = DataFrame(["00:00:01"]).apply(pd.to_timedelta) + df2 = DataFrame(["00:00:02"]).apply(pd.to_timedelta) + + dfn = DataFrame([NaT._value]).apply(pd.to_timedelta) + + scalar1 = pd.to_timedelta("00:00:01") + scalar2 = pd.to_timedelta("00:00:02") + timedelta_NaT = pd.to_timedelta("NaT") + + actual = scalar1 + scalar1 + assert actual == scalar2 + actual = scalar2 - scalar1 + assert actual == scalar1 + + actual = s1 + s1 + tm.assert_series_equal(actual, s2) + actual = s2 - s1 + tm.assert_series_equal(actual, s1) + + actual = s1 + scalar1 + tm.assert_series_equal(actual, s2) + actual = scalar1 + s1 + tm.assert_series_equal(actual, s2) + actual = s2 - scalar1 + tm.assert_series_equal(actual, s1) + actual = -scalar1 + s2 + tm.assert_series_equal(actual, s1) + + actual = s1 + timedelta_NaT + tm.assert_series_equal(actual, sn) + actual = timedelta_NaT + s1 + tm.assert_series_equal(actual, sn) + actual = s1 - timedelta_NaT + tm.assert_series_equal(actual, sn) + actual = -timedelta_NaT + s1 + tm.assert_series_equal(actual, sn) + + msg = "unsupported operand type" + with pytest.raises(TypeError, match=msg): + s1 + np.nan + with pytest.raises(TypeError, match=msg): + np.nan + s1 + with pytest.raises(TypeError, match=msg): + s1 - np.nan + with pytest.raises(TypeError, match=msg): + -np.nan + s1 + + actual = s1 + NaT + tm.assert_series_equal(actual, sn) + actual = s2 - NaT + tm.assert_series_equal(actual, sn) + + actual = s1 + df1 + tm.assert_frame_equal(actual, df2) + actual = s2 - df1 + tm.assert_frame_equal(actual, df1) + actual = df1 + s1 + tm.assert_frame_equal(actual, df2) + actual = df2 - s1 + tm.assert_frame_equal(actual, df1) + + actual = df1 + df1 + tm.assert_frame_equal(actual, df2) + actual = df2 - df1 + tm.assert_frame_equal(actual, df1) + + actual = df1 + scalar1 + tm.assert_frame_equal(actual, df2) + actual = df2 - scalar1 + tm.assert_frame_equal(actual, df1) + + actual = df1 + timedelta_NaT + tm.assert_frame_equal(actual, dfn) + actual = df1 - timedelta_NaT + tm.assert_frame_equal(actual, dfn) + + msg = "cannot subtract a datelike from|unsupported operand type" + with pytest.raises(TypeError, match=msg): + df1 + np.nan + with pytest.raises(TypeError, match=msg): + df1 - np.nan + + actual = df1 + NaT # NaT is datetime, not timedelta + tm.assert_frame_equal(actual, dfn) + actual = df1 - NaT + tm.assert_frame_equal(actual, dfn) + + # TODO: moved from tests.series.test_operators, needs splitting, cleanup, + # de-duplication, box-parametrization... + def test_operators_timedelta64(self): + # series ops + v1 = pd.date_range("2012-1-1", periods=3, freq="D") + v2 = pd.date_range("2012-1-2", periods=3, freq="D") + rs = Series(v2) - Series(v1) + xp = Series(1e9 * 3600 * 24, rs.index).astype("int64").astype("timedelta64[ns]") + tm.assert_series_equal(rs, xp) + assert rs.dtype == "timedelta64[ns]" + + df = DataFrame({"A": v1}) + td = Series([timedelta(days=i) for i in range(3)]) + assert td.dtype == "timedelta64[ns]" + + # series on the rhs + result = df["A"] - df["A"].shift() + assert result.dtype == "timedelta64[ns]" + + result = df["A"] + td + assert result.dtype == "M8[ns]" + + # scalar Timestamp on rhs + maxa = df["A"].max() + assert isinstance(maxa, Timestamp) + + resultb = df["A"] - df["A"].max() + assert resultb.dtype == "timedelta64[ns]" + + # timestamp on lhs + result = resultb + df["A"] + values = [Timestamp("20111230"), Timestamp("20120101"), Timestamp("20120103")] + expected = Series(values, dtype="M8[ns]", name="A") + tm.assert_series_equal(result, expected) + + # datetimes on rhs + result = df["A"] - datetime(2001, 1, 1) + expected = Series([timedelta(days=4017 + i) for i in range(3)], name="A") + tm.assert_series_equal(result, expected) + assert result.dtype == "m8[ns]" + + d = datetime(2001, 1, 1, 3, 4) + resulta = df["A"] - d + assert resulta.dtype == "m8[ns]" + + # roundtrip + resultb = resulta + d + tm.assert_series_equal(df["A"], resultb) + + # timedeltas on rhs + td = timedelta(days=1) + resulta = df["A"] + td + resultb = resulta - td + tm.assert_series_equal(resultb, df["A"]) + assert resultb.dtype == "M8[ns]" + + # roundtrip + td = timedelta(minutes=5, seconds=3) + resulta = df["A"] + td + resultb = resulta - td + tm.assert_series_equal(df["A"], resultb) + assert resultb.dtype == "M8[ns]" + + # inplace + value = rs[2] + np.timedelta64(timedelta(minutes=5, seconds=1)) + rs[2] += np.timedelta64(timedelta(minutes=5, seconds=1)) + assert rs[2] == value + + def test_timedelta64_ops_nat(self): + # GH 11349 + timedelta_series = Series([NaT, Timedelta("1s")]) + nat_series_dtype_timedelta = Series([NaT, NaT], dtype="timedelta64[ns]") + single_nat_dtype_timedelta = Series([NaT], dtype="timedelta64[ns]") + + # subtraction + tm.assert_series_equal(timedelta_series - NaT, nat_series_dtype_timedelta) + tm.assert_series_equal(-NaT + timedelta_series, nat_series_dtype_timedelta) + + tm.assert_series_equal( + timedelta_series - single_nat_dtype_timedelta, nat_series_dtype_timedelta + ) + tm.assert_series_equal( + -single_nat_dtype_timedelta + timedelta_series, nat_series_dtype_timedelta + ) + + # addition + tm.assert_series_equal( + nat_series_dtype_timedelta + NaT, nat_series_dtype_timedelta + ) + tm.assert_series_equal( + NaT + nat_series_dtype_timedelta, nat_series_dtype_timedelta + ) + + tm.assert_series_equal( + nat_series_dtype_timedelta + single_nat_dtype_timedelta, + nat_series_dtype_timedelta, + ) + tm.assert_series_equal( + single_nat_dtype_timedelta + nat_series_dtype_timedelta, + nat_series_dtype_timedelta, + ) + + tm.assert_series_equal(timedelta_series + NaT, nat_series_dtype_timedelta) + tm.assert_series_equal(NaT + timedelta_series, nat_series_dtype_timedelta) + + tm.assert_series_equal( + timedelta_series + single_nat_dtype_timedelta, nat_series_dtype_timedelta + ) + tm.assert_series_equal( + single_nat_dtype_timedelta + timedelta_series, nat_series_dtype_timedelta + ) + + tm.assert_series_equal( + nat_series_dtype_timedelta + NaT, nat_series_dtype_timedelta + ) + tm.assert_series_equal( + NaT + nat_series_dtype_timedelta, nat_series_dtype_timedelta + ) + + tm.assert_series_equal( + nat_series_dtype_timedelta + single_nat_dtype_timedelta, + nat_series_dtype_timedelta, + ) + tm.assert_series_equal( + single_nat_dtype_timedelta + nat_series_dtype_timedelta, + nat_series_dtype_timedelta, + ) + + # multiplication + tm.assert_series_equal( + nat_series_dtype_timedelta * 1.0, nat_series_dtype_timedelta + ) + tm.assert_series_equal( + 1.0 * nat_series_dtype_timedelta, nat_series_dtype_timedelta + ) + + tm.assert_series_equal(timedelta_series * 1, timedelta_series) + tm.assert_series_equal(1 * timedelta_series, timedelta_series) + + tm.assert_series_equal(timedelta_series * 1.5, Series([NaT, Timedelta("1.5s")])) + tm.assert_series_equal(1.5 * timedelta_series, Series([NaT, Timedelta("1.5s")])) + + tm.assert_series_equal(timedelta_series * np.nan, nat_series_dtype_timedelta) + tm.assert_series_equal(np.nan * timedelta_series, nat_series_dtype_timedelta) + + # division + tm.assert_series_equal(timedelta_series / 2, Series([NaT, Timedelta("0.5s")])) + tm.assert_series_equal(timedelta_series / 2.0, Series([NaT, Timedelta("0.5s")])) + tm.assert_series_equal(timedelta_series / np.nan, nat_series_dtype_timedelta) + + # ------------------------------------------------------------- + # Binary operations td64 arraylike and datetime-like + + @pytest.mark.parametrize("cls", [Timestamp, datetime, np.datetime64]) + def test_td64arr_add_sub_datetimelike_scalar( + self, cls, box_with_array, tz_naive_fixture + ): + # GH#11925, GH#29558, GH#23215 + tz = tz_naive_fixture + + dt_scalar = Timestamp("2012-01-01", tz=tz) + if cls is datetime: + ts = dt_scalar.to_pydatetime() + elif cls is np.datetime64: + if tz_naive_fixture is not None: + pytest.skip(f"{cls} doesn support {tz_naive_fixture}") + ts = dt_scalar.to_datetime64() + else: + ts = dt_scalar + + tdi = timedelta_range("1 day", periods=3) + expected = pd.date_range("2012-01-02", periods=3, tz=tz) + + tdarr = tm.box_expected(tdi, box_with_array) + expected = tm.box_expected(expected, box_with_array) + + tm.assert_equal(ts + tdarr, expected) + tm.assert_equal(tdarr + ts, expected) + + expected2 = pd.date_range("2011-12-31", periods=3, freq="-1D", tz=tz) + expected2 = tm.box_expected(expected2, box_with_array) + + tm.assert_equal(ts - tdarr, expected2) + tm.assert_equal(ts + (-tdarr), expected2) + + msg = "cannot subtract a datelike" + with pytest.raises(TypeError, match=msg): + tdarr - ts + + def test_td64arr_add_datetime64_nat(self, box_with_array): + # GH#23215 + other = np.datetime64("NaT") + + tdi = timedelta_range("1 day", periods=3) + expected = DatetimeIndex(["NaT", "NaT", "NaT"], dtype="M8[ns]") + + tdser = tm.box_expected(tdi, box_with_array) + expected = tm.box_expected(expected, box_with_array) + + tm.assert_equal(tdser + other, expected) + tm.assert_equal(other + tdser, expected) + + def test_td64arr_sub_dt64_array(self, box_with_array): + dti = pd.date_range("2016-01-01", periods=3) + tdi = TimedeltaIndex(["-1 Day"] * 3) + dtarr = dti.values + expected = DatetimeIndex(dtarr) - tdi + + tdi = tm.box_expected(tdi, box_with_array) + expected = tm.box_expected(expected, box_with_array) + + msg = "cannot subtract a datelike from" + with pytest.raises(TypeError, match=msg): + tdi - dtarr + + # TimedeltaIndex.__rsub__ + result = dtarr - tdi + tm.assert_equal(result, expected) + + def test_td64arr_add_dt64_array(self, box_with_array): + dti = pd.date_range("2016-01-01", periods=3) + tdi = TimedeltaIndex(["-1 Day"] * 3) + dtarr = dti.values + expected = DatetimeIndex(dtarr) + tdi + + tdi = tm.box_expected(tdi, box_with_array) + expected = tm.box_expected(expected, box_with_array) + + result = tdi + dtarr + tm.assert_equal(result, expected) + result = dtarr + tdi + tm.assert_equal(result, expected) + + # ------------------------------------------------------------------ + # Invalid __add__/__sub__ operations + + @pytest.mark.parametrize("pi_freq", ["D", "W", "Q", "h"]) + @pytest.mark.parametrize("tdi_freq", [None, "h"]) + def test_td64arr_sub_periodlike( + self, box_with_array, box_with_array2, tdi_freq, pi_freq + ): + # GH#20049 subtracting PeriodIndex should raise TypeError + tdi = TimedeltaIndex(["1 hours", "2 hours"], freq=tdi_freq) + dti = Timestamp("2018-03-07 17:16:40") + tdi + pi = dti.to_period(pi_freq) + per = pi[0] + + tdi = tm.box_expected(tdi, box_with_array) + pi = tm.box_expected(pi, box_with_array2) + msg = "cannot subtract|unsupported operand type" + with pytest.raises(TypeError, match=msg): + tdi - pi + + # GH#13078 subtraction of Period scalar not supported + with pytest.raises(TypeError, match=msg): + tdi - per + + @pytest.mark.parametrize( + "other", + [ + # GH#12624 for str case + "a", + # GH#19123 + 1, + 1.5, + np.array(2), + ], + ) + def test_td64arr_addsub_numeric_scalar_invalid(self, box_with_array, other): + # vector-like others are tested in test_td64arr_add_sub_numeric_arr_invalid + tdser = Series(["59 Days", "59 Days", "NaT"], dtype="m8[ns]") + tdarr = tm.box_expected(tdser, box_with_array) + + assert_invalid_addsub_type(tdarr, other) + + @pytest.mark.parametrize( + "vec", + [ + np.array([1, 2, 3]), + Index([1, 2, 3]), + Series([1, 2, 3]), + DataFrame([[1, 2, 3]]), + ], + ids=lambda x: type(x).__name__, + ) + def test_td64arr_addsub_numeric_arr_invalid( + self, box_with_array, vec, any_real_numpy_dtype + ): + tdser = Series(["59 Days", "59 Days", "NaT"], dtype="m8[ns]") + tdarr = tm.box_expected(tdser, box_with_array) + + vector = vec.astype(any_real_numpy_dtype) + assert_invalid_addsub_type(tdarr, vector) + + def test_td64arr_add_sub_int(self, box_with_array, one): + # Variants of `one` for #19012, deprecated GH#22535 + rng = timedelta_range("1 days 09:00:00", freq="h", periods=10) + tdarr = tm.box_expected(rng, box_with_array) + + msg = "Addition/subtraction of integers" + assert_invalid_addsub_type(tdarr, one, msg) + + # TODO: get inplace ops into assert_invalid_addsub_type + with pytest.raises(TypeError, match=msg): + tdarr += one + with pytest.raises(TypeError, match=msg): + tdarr -= one + + def test_td64arr_add_sub_integer_array(self, box_with_array): + # GH#19959, deprecated GH#22535 + # GH#22696 for DataFrame case, check that we don't dispatch to numpy + # implementation, which treats int64 as m8[ns] + box = box_with_array + xbox = np.ndarray if box is pd.array else box + + rng = timedelta_range("1 days 09:00:00", freq="h", periods=3) + tdarr = tm.box_expected(rng, box) + other = tm.box_expected([4, 3, 2], xbox) + + msg = "Addition/subtraction of integers and integer-arrays" + assert_invalid_addsub_type(tdarr, other, msg) + + def test_td64arr_addsub_integer_array_no_freq(self, box_with_array): + # GH#19959 + box = box_with_array + xbox = np.ndarray if box is pd.array else box + + tdi = TimedeltaIndex(["1 Day", "NaT", "3 Hours"]) + tdarr = tm.box_expected(tdi, box) + other = tm.box_expected([14, -1, 16], xbox) + + msg = "Addition/subtraction of integers" + assert_invalid_addsub_type(tdarr, other, msg) + + # ------------------------------------------------------------------ + # Operations with timedelta-like others + + def test_td64arr_add_sub_td64_array(self, box_with_array): + box = box_with_array + dti = pd.date_range("2016-01-01", periods=3) + tdi = dti - dti.shift(1) + tdarr = tdi.values + + expected = 2 * tdi + tdi = tm.box_expected(tdi, box) + expected = tm.box_expected(expected, box) + + result = tdi + tdarr + tm.assert_equal(result, expected) + result = tdarr + tdi + tm.assert_equal(result, expected) + + expected_sub = 0 * tdi + result = tdi - tdarr + tm.assert_equal(result, expected_sub) + result = tdarr - tdi + tm.assert_equal(result, expected_sub) + + def test_td64arr_add_sub_tdi(self, box_with_array, names): + # GH#17250 make sure result dtype is correct + # GH#19043 make sure names are propagated correctly + box = box_with_array + exname = get_expected_name(box, names) + + tdi = TimedeltaIndex(["0 days", "1 day"], name=names[1]) + tdi = np.array(tdi) if box in [tm.to_array, pd.array] else tdi + ser = Series([Timedelta(hours=3), Timedelta(hours=4)], name=names[0]) + expected = Series([Timedelta(hours=3), Timedelta(days=1, hours=4)], name=exname) + + ser = tm.box_expected(ser, box) + expected = tm.box_expected(expected, box) + + result = tdi + ser + tm.assert_equal(result, expected) + assert_dtype(result, "timedelta64[ns]") + + result = ser + tdi + tm.assert_equal(result, expected) + assert_dtype(result, "timedelta64[ns]") + + expected = Series( + [Timedelta(hours=-3), Timedelta(days=1, hours=-4)], name=exname + ) + expected = tm.box_expected(expected, box) + + result = tdi - ser + tm.assert_equal(result, expected) + assert_dtype(result, "timedelta64[ns]") + + result = ser - tdi + tm.assert_equal(result, -expected) + assert_dtype(result, "timedelta64[ns]") + + @pytest.mark.parametrize("tdnat", [np.timedelta64("NaT"), NaT]) + def test_td64arr_add_sub_td64_nat(self, box_with_array, tdnat): + # GH#18808, GH#23320 special handling for timedelta64("NaT") + box = box_with_array + tdi = TimedeltaIndex([NaT, Timedelta("1s")]) + expected = TimedeltaIndex(["NaT"] * 2) + + obj = tm.box_expected(tdi, box) + expected = tm.box_expected(expected, box) + + result = obj + tdnat + tm.assert_equal(result, expected) + result = tdnat + obj + tm.assert_equal(result, expected) + result = obj - tdnat + tm.assert_equal(result, expected) + result = tdnat - obj + tm.assert_equal(result, expected) + + def test_td64arr_add_timedeltalike(self, two_hours, box_with_array): + # only test adding/sub offsets as + is now numeric + # GH#10699 for Tick cases + box = box_with_array + rng = timedelta_range("1 days", "10 days") + expected = timedelta_range("1 days 02:00:00", "10 days 02:00:00", freq="D") + rng = tm.box_expected(rng, box) + expected = tm.box_expected(expected, box) + + result = rng + two_hours + tm.assert_equal(result, expected) + + result = two_hours + rng + tm.assert_equal(result, expected) + + def test_td64arr_sub_timedeltalike(self, two_hours, box_with_array): + # only test adding/sub offsets as - is now numeric + # GH#10699 for Tick cases + box = box_with_array + rng = timedelta_range("1 days", "10 days") + expected = timedelta_range("0 days 22:00:00", "9 days 22:00:00") + + rng = tm.box_expected(rng, box) + expected = tm.box_expected(expected, box) + + result = rng - two_hours + tm.assert_equal(result, expected) + + result = two_hours - rng + tm.assert_equal(result, -expected) + + # ------------------------------------------------------------------ + # __add__/__sub__ with DateOffsets and arrays of DateOffsets + + def test_td64arr_add_sub_offset_index(self, names, box_with_array): + # GH#18849, GH#19744 + box = box_with_array + exname = get_expected_name(box, names) + + tdi = TimedeltaIndex(["1 days 00:00:00", "3 days 04:00:00"], name=names[0]) + other = Index([offsets.Hour(n=1), offsets.Minute(n=-2)], name=names[1]) + other = np.array(other) if box in [tm.to_array, pd.array] else other + + expected = TimedeltaIndex( + [tdi[n] + other[n] for n in range(len(tdi))], freq="infer", name=exname + ) + expected_sub = TimedeltaIndex( + [tdi[n] - other[n] for n in range(len(tdi))], freq="infer", name=exname + ) + + tdi = tm.box_expected(tdi, box) + expected = tm.box_expected(expected, box).astype(object, copy=False) + expected_sub = tm.box_expected(expected_sub, box).astype(object, copy=False) + + with tm.assert_produces_warning(PerformanceWarning): + res = tdi + other + tm.assert_equal(res, expected) + + with tm.assert_produces_warning(PerformanceWarning): + res2 = other + tdi + tm.assert_equal(res2, expected) + + with tm.assert_produces_warning(PerformanceWarning): + res_sub = tdi - other + tm.assert_equal(res_sub, expected_sub) + + def test_td64arr_add_sub_offset_array(self, box_with_array): + # GH#18849, GH#18824 + box = box_with_array + tdi = TimedeltaIndex(["1 days 00:00:00", "3 days 04:00:00"]) + other = np.array([offsets.Hour(n=1), offsets.Minute(n=-2)]) + + expected = TimedeltaIndex( + [tdi[n] + other[n] for n in range(len(tdi))], freq="infer" + ) + expected_sub = TimedeltaIndex( + [tdi[n] - other[n] for n in range(len(tdi))], freq="infer" + ) + + tdi = tm.box_expected(tdi, box) + expected = tm.box_expected(expected, box).astype(object) + + with tm.assert_produces_warning(PerformanceWarning): + res = tdi + other + tm.assert_equal(res, expected) + + with tm.assert_produces_warning(PerformanceWarning): + res2 = other + tdi + tm.assert_equal(res2, expected) + + expected_sub = tm.box_expected(expected_sub, box_with_array).astype(object) + with tm.assert_produces_warning(PerformanceWarning): + res_sub = tdi - other + tm.assert_equal(res_sub, expected_sub) + + def test_td64arr_with_offset_series(self, names, box_with_array): + # GH#18849 + box = box_with_array + box2 = Series if box in [Index, tm.to_array, pd.array] else box + exname = get_expected_name(box, names) + + tdi = TimedeltaIndex(["1 days 00:00:00", "3 days 04:00:00"], name=names[0]) + other = Series([offsets.Hour(n=1), offsets.Minute(n=-2)], name=names[1]) + + expected_add = Series( + [tdi[n] + other[n] for n in range(len(tdi))], name=exname, dtype=object + ) + obj = tm.box_expected(tdi, box) + expected_add = tm.box_expected(expected_add, box2).astype(object) + + with tm.assert_produces_warning(PerformanceWarning): + res = obj + other + tm.assert_equal(res, expected_add) + + with tm.assert_produces_warning(PerformanceWarning): + res2 = other + obj + tm.assert_equal(res2, expected_add) + + expected_sub = Series( + [tdi[n] - other[n] for n in range(len(tdi))], name=exname, dtype=object + ) + expected_sub = tm.box_expected(expected_sub, box2).astype(object) + + with tm.assert_produces_warning(PerformanceWarning): + res3 = obj - other + tm.assert_equal(res3, expected_sub) + + @pytest.mark.parametrize("obox", [np.array, Index, Series]) + def test_td64arr_addsub_anchored_offset_arraylike(self, obox, box_with_array): + # GH#18824 + tdi = TimedeltaIndex(["1 days 00:00:00", "3 days 04:00:00"]) + tdi = tm.box_expected(tdi, box_with_array) + + anchored = obox([offsets.MonthEnd(), offsets.Day(n=2)]) + + # addition/subtraction ops with anchored offsets should issue + # a PerformanceWarning and _then_ raise a TypeError. + msg = "has incorrect type|cannot add the type MonthEnd" + with pytest.raises(TypeError, match=msg): + with tm.assert_produces_warning(PerformanceWarning): + tdi + anchored + with pytest.raises(TypeError, match=msg): + with tm.assert_produces_warning(PerformanceWarning): + anchored + tdi + with pytest.raises(TypeError, match=msg): + with tm.assert_produces_warning(PerformanceWarning): + tdi - anchored + with pytest.raises(TypeError, match=msg): + with tm.assert_produces_warning(PerformanceWarning): + anchored - tdi + + # ------------------------------------------------------------------ + # Unsorted + + def test_td64arr_add_sub_object_array(self, box_with_array): + box = box_with_array + xbox = np.ndarray if box is pd.array else box + + tdi = timedelta_range("1 day", periods=3, freq="D") + tdarr = tm.box_expected(tdi, box) + + other = np.array([Timedelta(days=1), offsets.Day(2), Timestamp("2000-01-04")]) + + with tm.assert_produces_warning(PerformanceWarning): + result = tdarr + other + + expected = Index( + [Timedelta(days=2), Timedelta(days=4), Timestamp("2000-01-07")] + ) + expected = tm.box_expected(expected, xbox).astype(object) + tm.assert_equal(result, expected) + + msg = "unsupported operand type|cannot subtract a datelike" + with pytest.raises(TypeError, match=msg): + with tm.assert_produces_warning(PerformanceWarning): + tdarr - other + + with tm.assert_produces_warning(PerformanceWarning): + result = other - tdarr + + expected = Index([Timedelta(0), Timedelta(0), Timestamp("2000-01-01")]) + expected = tm.box_expected(expected, xbox).astype(object) + tm.assert_equal(result, expected) + + +class TestTimedeltaArraylikeMulDivOps: + # Tests for timedelta64[ns] + # __mul__, __rmul__, __div__, __rdiv__, __floordiv__, __rfloordiv__ + + # ------------------------------------------------------------------ + # Multiplication + # organized with scalar others first, then array-like + + def test_td64arr_mul_int(self, box_with_array): + idx = TimedeltaIndex(np.arange(5, dtype="int64")) + idx = tm.box_expected(idx, box_with_array) + + result = idx * 1 + tm.assert_equal(result, idx) + + result = 1 * idx + tm.assert_equal(result, idx) + + def test_td64arr_mul_tdlike_scalar_raises(self, two_hours, box_with_array): + rng = timedelta_range("1 days", "10 days", name="foo") + rng = tm.box_expected(rng, box_with_array) + msg = "|".join( + [ + "argument must be an integer", + "cannot use operands with types dtype", + "Cannot multiply with", + ] + ) + with pytest.raises(TypeError, match=msg): + rng * two_hours + + def test_tdi_mul_int_array_zerodim(self, box_with_array): + rng5 = np.arange(5, dtype="int64") + idx = TimedeltaIndex(rng5) + expected = TimedeltaIndex(rng5 * 5) + + idx = tm.box_expected(idx, box_with_array) + expected = tm.box_expected(expected, box_with_array) + + result = idx * np.array(5, dtype="int64") + tm.assert_equal(result, expected) + + def test_tdi_mul_int_array(self, box_with_array): + rng5 = np.arange(5, dtype="int64") + idx = TimedeltaIndex(rng5) + expected = TimedeltaIndex(rng5**2) + + idx = tm.box_expected(idx, box_with_array) + expected = tm.box_expected(expected, box_with_array) + + result = idx * rng5 + tm.assert_equal(result, expected) + + def test_tdi_mul_int_series(self, box_with_array): + box = box_with_array + xbox = Series if box in [Index, tm.to_array, pd.array] else box + + idx = TimedeltaIndex(np.arange(5, dtype="int64")) + expected = TimedeltaIndex(np.arange(5, dtype="int64") ** 2) + + idx = tm.box_expected(idx, box) + expected = tm.box_expected(expected, xbox) + + result = idx * Series(np.arange(5, dtype="int64")) + tm.assert_equal(result, expected) + + def test_tdi_mul_float_series(self, box_with_array): + box = box_with_array + xbox = Series if box in [Index, tm.to_array, pd.array] else box + + idx = TimedeltaIndex(np.arange(5, dtype="int64")) + idx = tm.box_expected(idx, box) + + rng5f = np.arange(5, dtype="float64") + expected = TimedeltaIndex(rng5f * (rng5f + 1.0)) + expected = tm.box_expected(expected, xbox) + + result = idx * Series(rng5f + 1.0) + tm.assert_equal(result, expected) + + # TODO: Put Series/DataFrame in others? + @pytest.mark.parametrize( + "other", + [ + np.arange(1, 11), + Index(np.arange(1, 11), np.int64), + Index(range(1, 11), np.uint64), + Index(range(1, 11), np.float64), + pd.RangeIndex(1, 11), + ], + ids=lambda x: type(x).__name__, + ) + def test_tdi_rmul_arraylike(self, other, box_with_array): + box = box_with_array + + tdi = TimedeltaIndex(["1 Day"] * 10) + expected = timedelta_range("1 days", "10 days")._with_freq(None) + + tdi = tm.box_expected(tdi, box) + xbox = get_upcast_box(tdi, other) + + expected = tm.box_expected(expected, xbox) + + result = other * tdi + tm.assert_equal(result, expected) + commute = tdi * other + tm.assert_equal(commute, expected) + + # ------------------------------------------------------------------ + # __div__, __rdiv__ + + def test_td64arr_div_nat_invalid(self, box_with_array): + # don't allow division by NaT (maybe could in the future) + rng = timedelta_range("1 days", "10 days", name="foo") + rng = tm.box_expected(rng, box_with_array) + + with pytest.raises(TypeError, match="unsupported operand type"): + rng / NaT + with pytest.raises(TypeError, match="Cannot divide NaTType by"): + NaT / rng + + dt64nat = np.datetime64("NaT", "ns") + msg = "|".join( + [ + # 'divide' on npdev as of 2021-12-18 + "ufunc '(true_divide|divide)' cannot use operands", + "cannot perform __r?truediv__", + "Cannot divide datetime64 by TimedeltaArray", + ] + ) + with pytest.raises(TypeError, match=msg): + rng / dt64nat + with pytest.raises(TypeError, match=msg): + dt64nat / rng + + def test_td64arr_div_td64nat(self, box_with_array): + # GH#23829 + box = box_with_array + xbox = np.ndarray if box is pd.array else box + + rng = timedelta_range("1 days", "10 days") + rng = tm.box_expected(rng, box) + + other = np.timedelta64("NaT") + + expected = np.array([np.nan] * 10) + expected = tm.box_expected(expected, xbox) + + result = rng / other + tm.assert_equal(result, expected) + + result = other / rng + tm.assert_equal(result, expected) + + def test_td64arr_div_int(self, box_with_array): + idx = TimedeltaIndex(np.arange(5, dtype="int64")) + idx = tm.box_expected(idx, box_with_array) + + result = idx / 1 + tm.assert_equal(result, idx) + + with pytest.raises(TypeError, match="Cannot divide"): + # GH#23829 + 1 / idx + + def test_td64arr_div_tdlike_scalar(self, two_hours, box_with_array): + # GH#20088, GH#22163 ensure DataFrame returns correct dtype + box = box_with_array + xbox = np.ndarray if box is pd.array else box + + rng = timedelta_range("1 days", "10 days", name="foo") + expected = Index((np.arange(10) + 1) * 12, dtype=np.float64, name="foo") + + rng = tm.box_expected(rng, box) + expected = tm.box_expected(expected, xbox) + + result = rng / two_hours + tm.assert_equal(result, expected) + + result = two_hours / rng + expected = 1 / expected + tm.assert_equal(result, expected) + + @pytest.mark.parametrize("m", [1, 3, 10]) + @pytest.mark.parametrize("unit", ["D", "h", "m", "s", "ms", "us", "ns"]) + def test_td64arr_div_td64_scalar(self, m, unit, box_with_array): + box = box_with_array + xbox = np.ndarray if box is pd.array else box + + ser = Series([Timedelta(days=59)] * 3) + ser[2] = np.nan + flat = ser + ser = tm.box_expected(ser, box) + + # op + expected = Series([x / np.timedelta64(m, unit) for x in flat]) + expected = tm.box_expected(expected, xbox) + result = ser / np.timedelta64(m, unit) + tm.assert_equal(result, expected) + + # reverse op + expected = Series([Timedelta(np.timedelta64(m, unit)) / x for x in flat]) + expected = tm.box_expected(expected, xbox) + result = np.timedelta64(m, unit) / ser + tm.assert_equal(result, expected) + + def test_td64arr_div_tdlike_scalar_with_nat(self, two_hours, box_with_array): + box = box_with_array + xbox = np.ndarray if box is pd.array else box + + rng = TimedeltaIndex(["1 days", NaT, "2 days"], name="foo") + expected = Index([12, np.nan, 24], dtype=np.float64, name="foo") + + rng = tm.box_expected(rng, box) + expected = tm.box_expected(expected, xbox) + + result = rng / two_hours + tm.assert_equal(result, expected) + + result = two_hours / rng + expected = 1 / expected + tm.assert_equal(result, expected) + + def test_td64arr_div_td64_ndarray(self, box_with_array): + # GH#22631 + box = box_with_array + xbox = np.ndarray if box is pd.array else box + + rng = TimedeltaIndex(["1 days", NaT, "2 days"]) + expected = Index([12, np.nan, 24], dtype=np.float64) + + rng = tm.box_expected(rng, box) + expected = tm.box_expected(expected, xbox) + + other = np.array([2, 4, 2], dtype="m8[h]") + result = rng / other + tm.assert_equal(result, expected) + + result = rng / tm.box_expected(other, box) + tm.assert_equal(result, expected) + + result = rng / other.astype(object) + tm.assert_equal(result, expected.astype(object)) + + result = rng / list(other) + tm.assert_equal(result, expected) + + # reversed op + expected = 1 / expected + result = other / rng + tm.assert_equal(result, expected) + + result = tm.box_expected(other, box) / rng + tm.assert_equal(result, expected) + + result = other.astype(object) / rng + tm.assert_equal(result, expected) + + result = list(other) / rng + tm.assert_equal(result, expected) + + def test_tdarr_div_length_mismatch(self, box_with_array): + rng = TimedeltaIndex(["1 days", NaT, "2 days"]) + mismatched = [1, 2, 3, 4] + + rng = tm.box_expected(rng, box_with_array) + msg = "Cannot divide vectors|Unable to coerce to Series" + for obj in [mismatched, mismatched[:2]]: + # one shorter, one longer + for other in [obj, np.array(obj), Index(obj)]: + with pytest.raises(ValueError, match=msg): + rng / other + with pytest.raises(ValueError, match=msg): + other / rng + + def test_td64_div_object_mixed_result(self, box_with_array): + # Case where we having a NaT in the result inseat of timedelta64("NaT") + # is misleading + orig = timedelta_range("1 Day", periods=3).insert(1, NaT) + tdi = tm.box_expected(orig, box_with_array, transpose=False) + + other = np.array([orig[0], 1.5, 2.0, orig[2]], dtype=object) + other = tm.box_expected(other, box_with_array, transpose=False) + + res = tdi / other + + expected = Index([1.0, np.timedelta64("NaT", "ns"), orig[0], 1.5], dtype=object) + expected = tm.box_expected(expected, box_with_array, transpose=False) + if isinstance(expected, NumpyExtensionArray): + expected = expected.to_numpy() + tm.assert_equal(res, expected) + if box_with_array is DataFrame: + # We have a np.timedelta64(NaT), not pd.NaT + assert isinstance(res.iloc[1, 0], np.timedelta64) + + res = tdi // other + + expected = Index([1, np.timedelta64("NaT", "ns"), orig[0], 1], dtype=object) + expected = tm.box_expected(expected, box_with_array, transpose=False) + if isinstance(expected, NumpyExtensionArray): + expected = expected.to_numpy() + tm.assert_equal(res, expected) + if box_with_array is DataFrame: + # We have a np.timedelta64(NaT), not pd.NaT + assert isinstance(res.iloc[1, 0], np.timedelta64) + + # ------------------------------------------------------------------ + # __floordiv__, __rfloordiv__ + + def test_td64arr_floordiv_td64arr_with_nat( + self, box_with_array, using_array_manager + ): + # GH#35529 + box = box_with_array + xbox = np.ndarray if box is pd.array else box + + left = Series([1000, 222330, 30], dtype="timedelta64[ns]") + right = Series([1000, 222330, None], dtype="timedelta64[ns]") + + left = tm.box_expected(left, box) + right = tm.box_expected(right, box) + + expected = np.array([1.0, 1.0, np.nan], dtype=np.float64) + expected = tm.box_expected(expected, xbox) + if box is DataFrame and using_array_manager: + # INFO(ArrayManager) floordiv returns integer, and ArrayManager + # performs ops column-wise and thus preserves int64 dtype for + # columns without missing values + expected[[0, 1]] = expected[[0, 1]].astype("int64") + + with tm.maybe_produces_warning( + RuntimeWarning, box is pd.array, check_stacklevel=False + ): + result = left // right + + tm.assert_equal(result, expected) + + # case that goes through __rfloordiv__ with arraylike + with tm.maybe_produces_warning( + RuntimeWarning, box is pd.array, check_stacklevel=False + ): + result = np.asarray(left) // right + tm.assert_equal(result, expected) + + @pytest.mark.filterwarnings("ignore:invalid value encountered:RuntimeWarning") + def test_td64arr_floordiv_tdscalar(self, box_with_array, scalar_td): + # GH#18831, GH#19125 + box = box_with_array + xbox = np.ndarray if box is pd.array else box + td = Timedelta("5m3s") # i.e. (scalar_td - 1sec) / 2 + + td1 = Series([td, td, NaT], dtype="m8[ns]") + td1 = tm.box_expected(td1, box, transpose=False) + + expected = Series([0, 0, np.nan]) + expected = tm.box_expected(expected, xbox, transpose=False) + + result = td1 // scalar_td + tm.assert_equal(result, expected) + + # Reversed op + expected = Series([2, 2, np.nan]) + expected = tm.box_expected(expected, xbox, transpose=False) + + result = scalar_td // td1 + tm.assert_equal(result, expected) + + # same thing buts let's be explicit about calling __rfloordiv__ + result = td1.__rfloordiv__(scalar_td) + tm.assert_equal(result, expected) + + def test_td64arr_floordiv_int(self, box_with_array): + idx = TimedeltaIndex(np.arange(5, dtype="int64")) + idx = tm.box_expected(idx, box_with_array) + result = idx // 1 + tm.assert_equal(result, idx) + + pattern = "floor_divide cannot use operands|Cannot divide int by Timedelta*" + with pytest.raises(TypeError, match=pattern): + 1 // idx + + # ------------------------------------------------------------------ + # mod, divmod + # TODO: operations with timedelta-like arrays, numeric arrays, + # reversed ops + + def test_td64arr_mod_tdscalar(self, box_with_array, three_days): + tdi = timedelta_range("1 Day", "9 days") + tdarr = tm.box_expected(tdi, box_with_array) + + expected = TimedeltaIndex(["1 Day", "2 Days", "0 Days"] * 3) + expected = tm.box_expected(expected, box_with_array) + + result = tdarr % three_days + tm.assert_equal(result, expected) + + warn = None + if box_with_array is DataFrame and isinstance(three_days, pd.DateOffset): + warn = PerformanceWarning + # TODO: making expected be object here a result of DataFrame.__divmod__ + # being defined in a naive way that does not dispatch to the underlying + # array's __divmod__ + expected = expected.astype(object) + + with tm.assert_produces_warning(warn): + result = divmod(tdarr, three_days) + + tm.assert_equal(result[1], expected) + tm.assert_equal(result[0], tdarr // three_days) + + def test_td64arr_mod_int(self, box_with_array): + tdi = timedelta_range("1 ns", "10 ns", periods=10) + tdarr = tm.box_expected(tdi, box_with_array) + + expected = TimedeltaIndex(["1 ns", "0 ns"] * 5) + expected = tm.box_expected(expected, box_with_array) + + result = tdarr % 2 + tm.assert_equal(result, expected) + + msg = "Cannot divide int by" + with pytest.raises(TypeError, match=msg): + 2 % tdarr + + result = divmod(tdarr, 2) + tm.assert_equal(result[1], expected) + tm.assert_equal(result[0], tdarr // 2) + + def test_td64arr_rmod_tdscalar(self, box_with_array, three_days): + tdi = timedelta_range("1 Day", "9 days") + tdarr = tm.box_expected(tdi, box_with_array) + + expected = ["0 Days", "1 Day", "0 Days"] + ["3 Days"] * 6 + expected = TimedeltaIndex(expected) + expected = tm.box_expected(expected, box_with_array) + + result = three_days % tdarr + tm.assert_equal(result, expected) + + result = divmod(three_days, tdarr) + tm.assert_equal(result[1], expected) + tm.assert_equal(result[0], three_days // tdarr) + + # ------------------------------------------------------------------ + # Operations with invalid others + + def test_td64arr_mul_tdscalar_invalid(self, box_with_array, scalar_td): + td1 = Series([timedelta(minutes=5, seconds=3)] * 3) + td1.iloc[2] = np.nan + + td1 = tm.box_expected(td1, box_with_array) + + # check that we are getting a TypeError + # with 'operate' (from core/ops.py) for the ops that are not + # defined + pattern = "operate|unsupported|cannot|not supported" + with pytest.raises(TypeError, match=pattern): + td1 * scalar_td + with pytest.raises(TypeError, match=pattern): + scalar_td * td1 + + def test_td64arr_mul_too_short_raises(self, box_with_array): + idx = TimedeltaIndex(np.arange(5, dtype="int64")) + idx = tm.box_expected(idx, box_with_array) + msg = "|".join( + [ + "cannot use operands with types dtype", + "Cannot multiply with unequal lengths", + "Unable to coerce to Series", + ] + ) + with pytest.raises(TypeError, match=msg): + # length check before dtype check + idx * idx[:3] + with pytest.raises(ValueError, match=msg): + idx * np.array([1, 2]) + + def test_td64arr_mul_td64arr_raises(self, box_with_array): + idx = TimedeltaIndex(np.arange(5, dtype="int64")) + idx = tm.box_expected(idx, box_with_array) + msg = "cannot use operands with types dtype" + with pytest.raises(TypeError, match=msg): + idx * idx + + # ------------------------------------------------------------------ + # Operations with numeric others + + def test_td64arr_mul_numeric_scalar(self, box_with_array, one): + # GH#4521 + # divide/multiply by integers + tdser = Series(["59 Days", "59 Days", "NaT"], dtype="m8[ns]") + expected = Series(["-59 Days", "-59 Days", "NaT"], dtype="timedelta64[ns]") + + tdser = tm.box_expected(tdser, box_with_array) + expected = tm.box_expected(expected, box_with_array) + + result = tdser * (-one) + tm.assert_equal(result, expected) + result = (-one) * tdser + tm.assert_equal(result, expected) + + expected = Series(["118 Days", "118 Days", "NaT"], dtype="timedelta64[ns]") + expected = tm.box_expected(expected, box_with_array) + + result = tdser * (2 * one) + tm.assert_equal(result, expected) + result = (2 * one) * tdser + tm.assert_equal(result, expected) + + @pytest.mark.parametrize("two", [2, 2.0, np.array(2), np.array(2.0)]) + def test_td64arr_div_numeric_scalar(self, box_with_array, two): + # GH#4521 + # divide/multiply by integers + tdser = Series(["59 Days", "59 Days", "NaT"], dtype="m8[ns]") + expected = Series(["29.5D", "29.5D", "NaT"], dtype="timedelta64[ns]") + + tdser = tm.box_expected(tdser, box_with_array) + expected = tm.box_expected(expected, box_with_array) + + result = tdser / two + tm.assert_equal(result, expected) + + with pytest.raises(TypeError, match="Cannot divide"): + two / tdser + + @pytest.mark.parametrize("two", [2, 2.0, np.array(2), np.array(2.0)]) + def test_td64arr_floordiv_numeric_scalar(self, box_with_array, two): + tdser = Series(["59 Days", "59 Days", "NaT"], dtype="m8[ns]") + expected = Series(["29.5D", "29.5D", "NaT"], dtype="timedelta64[ns]") + + tdser = tm.box_expected(tdser, box_with_array) + expected = tm.box_expected(expected, box_with_array) + + result = tdser // two + tm.assert_equal(result, expected) + + with pytest.raises(TypeError, match="Cannot divide"): + two // tdser + + @pytest.mark.parametrize( + "vector", + [np.array([20, 30, 40]), Index([20, 30, 40]), Series([20, 30, 40])], + ids=lambda x: type(x).__name__, + ) + def test_td64arr_rmul_numeric_array( + self, + box_with_array, + vector, + any_real_numpy_dtype, + ): + # GH#4521 + # divide/multiply by integers + + tdser = Series(["59 Days", "59 Days", "NaT"], dtype="m8[ns]") + vector = vector.astype(any_real_numpy_dtype) + + expected = Series(["1180 Days", "1770 Days", "NaT"], dtype="timedelta64[ns]") + + tdser = tm.box_expected(tdser, box_with_array) + xbox = get_upcast_box(tdser, vector) + + expected = tm.box_expected(expected, xbox) + + result = tdser * vector + tm.assert_equal(result, expected) + + result = vector * tdser + tm.assert_equal(result, expected) + + @pytest.mark.parametrize( + "vector", + [np.array([20, 30, 40]), Index([20, 30, 40]), Series([20, 30, 40])], + ids=lambda x: type(x).__name__, + ) + def test_td64arr_div_numeric_array( + self, box_with_array, vector, any_real_numpy_dtype + ): + # GH#4521 + # divide/multiply by integers + + tdser = Series(["59 Days", "59 Days", "NaT"], dtype="m8[ns]") + vector = vector.astype(any_real_numpy_dtype) + + expected = Series(["2.95D", "1D 23h 12m", "NaT"], dtype="timedelta64[ns]") + + tdser = tm.box_expected(tdser, box_with_array) + xbox = get_upcast_box(tdser, vector) + expected = tm.box_expected(expected, xbox) + + result = tdser / vector + tm.assert_equal(result, expected) + + pattern = "|".join( + [ + "true_divide'? cannot use operands", + "cannot perform __div__", + "cannot perform __truediv__", + "unsupported operand", + "Cannot divide", + "ufunc 'divide' cannot use operands with types", + ] + ) + with pytest.raises(TypeError, match=pattern): + vector / tdser + + result = tdser / vector.astype(object) + if box_with_array is DataFrame: + expected = [tdser.iloc[0, n] / vector[n] for n in range(len(vector))] + expected = tm.box_expected(expected, xbox).astype(object) + # We specifically expect timedelta64("NaT") here, not pd.NA + msg = "The 'downcast' keyword in fillna" + with tm.assert_produces_warning(FutureWarning, match=msg): + expected[2] = expected[2].fillna( + np.timedelta64("NaT", "ns"), downcast=False + ) + else: + expected = [tdser[n] / vector[n] for n in range(len(tdser))] + expected = [ + x if x is not NaT else np.timedelta64("NaT", "ns") for x in expected + ] + if xbox is tm.to_array: + expected = tm.to_array(expected).astype(object) + else: + expected = xbox(expected, dtype=object) + + tm.assert_equal(result, expected) + + with pytest.raises(TypeError, match=pattern): + vector.astype(object) / tdser + + def test_td64arr_mul_int_series(self, box_with_array, names): + # GH#19042 test for correct name attachment + box = box_with_array + exname = get_expected_name(box, names) + + tdi = TimedeltaIndex( + ["0days", "1day", "2days", "3days", "4days"], name=names[0] + ) + # TODO: Should we be parametrizing over types for `ser` too? + ser = Series([0, 1, 2, 3, 4], dtype=np.int64, name=names[1]) + + expected = Series( + ["0days", "1day", "4days", "9days", "16days"], + dtype="timedelta64[ns]", + name=exname, + ) + + tdi = tm.box_expected(tdi, box) + xbox = get_upcast_box(tdi, ser) + + expected = tm.box_expected(expected, xbox) + + result = ser * tdi + tm.assert_equal(result, expected) + + result = tdi * ser + tm.assert_equal(result, expected) + + # TODO: Should we be parametrizing over types for `ser` too? + def test_float_series_rdiv_td64arr(self, box_with_array, names): + # GH#19042 test for correct name attachment + box = box_with_array + tdi = TimedeltaIndex( + ["0days", "1day", "2days", "3days", "4days"], name=names[0] + ) + ser = Series([1.5, 3, 4.5, 6, 7.5], dtype=np.float64, name=names[1]) + + xname = names[2] if box not in [tm.to_array, pd.array] else names[1] + expected = Series( + [tdi[n] / ser[n] for n in range(len(ser))], + dtype="timedelta64[ns]", + name=xname, + ) + + tdi = tm.box_expected(tdi, box) + xbox = get_upcast_box(tdi, ser) + expected = tm.box_expected(expected, xbox) + + result = ser.__rtruediv__(tdi) + if box is DataFrame: + assert result is NotImplemented + else: + tm.assert_equal(result, expected) + + def test_td64arr_all_nat_div_object_dtype_numeric(self, box_with_array): + # GH#39750 make sure we infer the result as td64 + tdi = TimedeltaIndex([NaT, NaT]) + + left = tm.box_expected(tdi, box_with_array) + right = np.array([2, 2.0], dtype=object) + + tdnat = np.timedelta64("NaT", "ns") + expected = Index([tdnat] * 2, dtype=object) + if box_with_array is not Index: + expected = tm.box_expected(expected, box_with_array).astype(object) + if box_with_array in [Series, DataFrame]: + msg = "The 'downcast' keyword in fillna is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = expected.fillna(tdnat, downcast=False) # GH#18463 + + result = left / right + tm.assert_equal(result, expected) + + result = left // right + tm.assert_equal(result, expected) + + +class TestTimedelta64ArrayLikeArithmetic: + # Arithmetic tests for timedelta64[ns] vectors fully parametrized over + # DataFrame/Series/TimedeltaIndex/TimedeltaArray. Ideally all arithmetic + # tests will eventually end up here. + + def test_td64arr_pow_invalid(self, scalar_td, box_with_array): + td1 = Series([timedelta(minutes=5, seconds=3)] * 3) + td1.iloc[2] = np.nan + + td1 = tm.box_expected(td1, box_with_array) + + # check that we are getting a TypeError + # with 'operate' (from core/ops.py) for the ops that are not + # defined + pattern = "operate|unsupported|cannot|not supported" + with pytest.raises(TypeError, match=pattern): + scalar_td**td1 + + with pytest.raises(TypeError, match=pattern): + td1**scalar_td + + +def test_add_timestamp_to_timedelta(): + # GH: 35897 + timestamp = Timestamp("2021-01-01") + result = timestamp + timedelta_range("0s", "1s", periods=31) + expected = DatetimeIndex( + [ + timestamp + + ( + pd.to_timedelta("0.033333333s") * i + + pd.to_timedelta("0.000000001s") * divmod(i, 3)[0] + ) + for i in range(31) + ] + ) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_arithmetic.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_arithmetic.py new file mode 100644 index 0000000000000000000000000000000000000000..9ff690cdc914d7f81d134a2bc93287fb914067e2 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_arithmetic.py @@ -0,0 +1,134 @@ +import operator + +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm + + +@pytest.fixture +def data(): + """Fixture returning boolean array with valid and missing values.""" + return pd.array( + [True, False] * 4 + [np.nan] + [True, False] * 44 + [np.nan] + [True, False], + dtype="boolean", + ) + + +@pytest.fixture +def left_array(): + """Fixture returning boolean array with valid and missing values.""" + return pd.array([True] * 3 + [False] * 3 + [None] * 3, dtype="boolean") + + +@pytest.fixture +def right_array(): + """Fixture returning boolean array with valid and missing values.""" + return pd.array([True, False, None] * 3, dtype="boolean") + + +# Basic test for the arithmetic array ops +# ----------------------------------------------------------------------------- + + +@pytest.mark.parametrize( + "opname, exp", + [ + ("add", [True, True, None, True, False, None, None, None, None]), + ("mul", [True, False, None, False, False, None, None, None, None]), + ], + ids=["add", "mul"], +) +def test_add_mul(left_array, right_array, opname, exp): + op = getattr(operator, opname) + result = op(left_array, right_array) + expected = pd.array(exp, dtype="boolean") + tm.assert_extension_array_equal(result, expected) + + +def test_sub(left_array, right_array): + msg = ( + r"numpy boolean subtract, the `-` operator, is (?:deprecated|not supported), " + r"use the bitwise_xor, the `\^` operator, or the logical_xor function instead\." + ) + with pytest.raises(TypeError, match=msg): + left_array - right_array + + +def test_div(left_array, right_array): + msg = "operator '.*' not implemented for bool dtypes" + with pytest.raises(NotImplementedError, match=msg): + # check that we are matching the non-masked Series behavior + pd.Series(left_array._data) / pd.Series(right_array._data) + + with pytest.raises(NotImplementedError, match=msg): + left_array / right_array + + +@pytest.mark.parametrize( + "opname", + [ + "floordiv", + "mod", + "pow", + ], +) +def test_op_int8(left_array, right_array, opname): + op = getattr(operator, opname) + if opname != "mod": + msg = "operator '.*' not implemented for bool dtypes" + with pytest.raises(NotImplementedError, match=msg): + result = op(left_array, right_array) + return + result = op(left_array, right_array) + expected = op(left_array.astype("Int8"), right_array.astype("Int8")) + tm.assert_extension_array_equal(result, expected) + + +# Test generic characteristics / errors +# ----------------------------------------------------------------------------- + + +def test_error_invalid_values(data, all_arithmetic_operators): + # invalid ops + op = all_arithmetic_operators + s = pd.Series(data) + ops = getattr(s, op) + + # invalid scalars + msg = ( + "did not contain a loop with signature matching types|" + "BooleanArray cannot perform the operation|" + "not supported for the input types, and the inputs could not be safely coerced " + "to any supported types according to the casting rule ''safe''|" + "not supported for dtype" + ) + with pytest.raises(TypeError, match=msg): + ops("foo") + msg = "|".join( + [ + r"unsupported operand type\(s\) for", + "Concatenation operation is not implemented for NumPy arrays", + "has no kernel", + "not supported for dtype", + ] + ) + with pytest.raises(TypeError, match=msg): + ops(pd.Timestamp("20180101")) + + # invalid array-likes + if op not in ("__mul__", "__rmul__"): + # TODO(extension) numpy's mul with object array sees booleans as numbers + msg = "|".join( + [ + r"unsupported operand type\(s\) for", + "can only concatenate str", + "not all arguments converted during string formatting", + "has no kernel", + "not implemented", + "not supported for dtype", + ] + ) + with pytest.raises(TypeError, match=msg): + ops(pd.Series("foo", index=s.index)) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_astype.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_astype.py new file mode 100644 index 0000000000000000000000000000000000000000..8c2672218f273c6ff39ae0a0b9c86f21879e45f3 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_astype.py @@ -0,0 +1,59 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm + + +def test_astype(using_infer_string): + # with missing values + arr = pd.array([True, False, None], dtype="boolean") + + with pytest.raises(ValueError, match="cannot convert NA to integer"): + arr.astype("int64") + + with pytest.raises(ValueError, match="cannot convert float NaN to"): + arr.astype("bool") + + result = arr.astype("float64") + expected = np.array([1, 0, np.nan], dtype="float64") + tm.assert_numpy_array_equal(result, expected) + + result = arr.astype("str") + if using_infer_string: + expected = pd.array( + ["True", "False", None], dtype=pd.StringDtype(na_value=np.nan) + ) + tm.assert_extension_array_equal(result, expected) + else: + expected = np.array(["True", "False", ""], dtype=f"{tm.ENDIAN}U5") + tm.assert_numpy_array_equal(result, expected) + + # no missing values + arr = pd.array([True, False, True], dtype="boolean") + result = arr.astype("int64") + expected = np.array([1, 0, 1], dtype="int64") + tm.assert_numpy_array_equal(result, expected) + + result = arr.astype("bool") + expected = np.array([True, False, True], dtype="bool") + tm.assert_numpy_array_equal(result, expected) + + +def test_astype_to_boolean_array(): + # astype to BooleanArray + arr = pd.array([True, False, None], dtype="boolean") + + result = arr.astype("boolean") + tm.assert_extension_array_equal(result, arr) + result = arr.astype(pd.BooleanDtype()) + tm.assert_extension_array_equal(result, arr) + + +def test_astype_to_integer_array(): + # astype to IntegerArray + arr = pd.array([True, False, None], dtype="boolean") + + result = arr.astype("Int64") + expected = pd.array([1, 0, None], dtype="Int64") + tm.assert_extension_array_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_comparison.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_comparison.py new file mode 100644 index 0000000000000000000000000000000000000000..2eeb9da574b1e7973d98390ada40f23f57526203 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_comparison.py @@ -0,0 +1,60 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm +from pandas.arrays import BooleanArray +from pandas.tests.arrays.masked_shared import ComparisonOps + + +@pytest.fixture +def data(): + """Fixture returning boolean array with valid and missing data""" + return pd.array( + [True, False] * 4 + [np.nan] + [True, False] * 44 + [np.nan] + [True, False], + dtype="boolean", + ) + + +@pytest.fixture +def dtype(): + """Fixture returning BooleanDtype""" + return pd.BooleanDtype() + + +class TestComparisonOps(ComparisonOps): + def test_compare_scalar(self, data, comparison_op): + self._compare_other(data, comparison_op, True) + + def test_compare_array(self, data, comparison_op): + other = pd.array([True] * len(data), dtype="boolean") + self._compare_other(data, comparison_op, other) + other = np.array([True] * len(data)) + self._compare_other(data, comparison_op, other) + other = pd.Series([True] * len(data)) + self._compare_other(data, comparison_op, other) + + @pytest.mark.parametrize("other", [True, False, pd.NA]) + def test_scalar(self, other, comparison_op, dtype): + ComparisonOps.test_scalar(self, other, comparison_op, dtype) + + def test_array(self, comparison_op): + op = comparison_op + a = pd.array([True] * 3 + [False] * 3 + [None] * 3, dtype="boolean") + b = pd.array([True, False, None] * 3, dtype="boolean") + + result = op(a, b) + + values = op(a._data, b._data) + mask = a._mask | b._mask + expected = BooleanArray(values, mask) + tm.assert_extension_array_equal(result, expected) + + # ensure we haven't mutated anything inplace + result[0] = None + tm.assert_extension_array_equal( + a, pd.array([True] * 3 + [False] * 3 + [None] * 3, dtype="boolean") + ) + tm.assert_extension_array_equal( + b, pd.array([True, False, None] * 3, dtype="boolean") + ) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_construction.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_construction.py new file mode 100644 index 0000000000000000000000000000000000000000..645e763fbf00cec4f62474fc7d2d2be564a4e4ba --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_construction.py @@ -0,0 +1,325 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm +from pandas.arrays import BooleanArray +from pandas.core.arrays.boolean import coerce_to_array + + +def test_boolean_array_constructor(): + values = np.array([True, False, True, False], dtype="bool") + mask = np.array([False, False, False, True], dtype="bool") + + result = BooleanArray(values, mask) + expected = pd.array([True, False, True, None], dtype="boolean") + tm.assert_extension_array_equal(result, expected) + + with pytest.raises(TypeError, match="values should be boolean numpy array"): + BooleanArray(values.tolist(), mask) + + with pytest.raises(TypeError, match="mask should be boolean numpy array"): + BooleanArray(values, mask.tolist()) + + with pytest.raises(TypeError, match="values should be boolean numpy array"): + BooleanArray(values.astype(int), mask) + + with pytest.raises(TypeError, match="mask should be boolean numpy array"): + BooleanArray(values, None) + + with pytest.raises(ValueError, match="values.shape must match mask.shape"): + BooleanArray(values.reshape(1, -1), mask) + + with pytest.raises(ValueError, match="values.shape must match mask.shape"): + BooleanArray(values, mask.reshape(1, -1)) + + +def test_boolean_array_constructor_copy(): + values = np.array([True, False, True, False], dtype="bool") + mask = np.array([False, False, False, True], dtype="bool") + + result = BooleanArray(values, mask) + assert result._data is values + assert result._mask is mask + + result = BooleanArray(values, mask, copy=True) + assert result._data is not values + assert result._mask is not mask + + +def test_to_boolean_array(): + expected = BooleanArray( + np.array([True, False, True]), np.array([False, False, False]) + ) + + result = pd.array([True, False, True], dtype="boolean") + tm.assert_extension_array_equal(result, expected) + result = pd.array(np.array([True, False, True]), dtype="boolean") + tm.assert_extension_array_equal(result, expected) + result = pd.array(np.array([True, False, True], dtype=object), dtype="boolean") + tm.assert_extension_array_equal(result, expected) + + # with missing values + expected = BooleanArray( + np.array([True, False, True]), np.array([False, False, True]) + ) + + result = pd.array([True, False, None], dtype="boolean") + tm.assert_extension_array_equal(result, expected) + result = pd.array(np.array([True, False, None], dtype=object), dtype="boolean") + tm.assert_extension_array_equal(result, expected) + + +def test_to_boolean_array_all_none(): + expected = BooleanArray(np.array([True, True, True]), np.array([True, True, True])) + + result = pd.array([None, None, None], dtype="boolean") + tm.assert_extension_array_equal(result, expected) + result = pd.array(np.array([None, None, None], dtype=object), dtype="boolean") + tm.assert_extension_array_equal(result, expected) + + +@pytest.mark.parametrize( + "a, b", + [ + ([True, False, None, np.nan, pd.NA], [True, False, None, None, None]), + ([True, np.nan], [True, None]), + ([True, pd.NA], [True, None]), + ([np.nan, np.nan], [None, None]), + (np.array([np.nan, np.nan], dtype=float), [None, None]), + ], +) +def test_to_boolean_array_missing_indicators(a, b): + result = pd.array(a, dtype="boolean") + expected = pd.array(b, dtype="boolean") + tm.assert_extension_array_equal(result, expected) + + +@pytest.mark.parametrize( + "values", + [ + ["foo", "bar"], + ["1", "2"], + # "foo", + [1, 2], + [1.0, 2.0], + pd.date_range("20130101", periods=2), + np.array(["foo"]), + np.array([1, 2]), + np.array([1.0, 2.0]), + [np.nan, {"a": 1}], + ], +) +def test_to_boolean_array_error(values): + # error in converting existing arrays to BooleanArray + msg = "Need to pass bool-like value" + with pytest.raises(TypeError, match=msg): + pd.array(values, dtype="boolean") + + +def test_to_boolean_array_from_integer_array(): + result = pd.array(np.array([1, 0, 1, 0]), dtype="boolean") + expected = pd.array([True, False, True, False], dtype="boolean") + tm.assert_extension_array_equal(result, expected) + + # with missing values + result = pd.array(np.array([1, 0, 1, None]), dtype="boolean") + expected = pd.array([True, False, True, None], dtype="boolean") + tm.assert_extension_array_equal(result, expected) + + +def test_to_boolean_array_from_float_array(): + result = pd.array(np.array([1.0, 0.0, 1.0, 0.0]), dtype="boolean") + expected = pd.array([True, False, True, False], dtype="boolean") + tm.assert_extension_array_equal(result, expected) + + # with missing values + result = pd.array(np.array([1.0, 0.0, 1.0, np.nan]), dtype="boolean") + expected = pd.array([True, False, True, None], dtype="boolean") + tm.assert_extension_array_equal(result, expected) + + +def test_to_boolean_array_integer_like(): + # integers of 0's and 1's + result = pd.array([1, 0, 1, 0], dtype="boolean") + expected = pd.array([True, False, True, False], dtype="boolean") + tm.assert_extension_array_equal(result, expected) + + # with missing values + result = pd.array([1, 0, 1, None], dtype="boolean") + expected = pd.array([True, False, True, None], dtype="boolean") + tm.assert_extension_array_equal(result, expected) + + +def test_coerce_to_array(): + # TODO this is currently not public API + values = np.array([True, False, True, False], dtype="bool") + mask = np.array([False, False, False, True], dtype="bool") + result = BooleanArray(*coerce_to_array(values, mask=mask)) + expected = BooleanArray(values, mask) + tm.assert_extension_array_equal(result, expected) + assert result._data is values + assert result._mask is mask + result = BooleanArray(*coerce_to_array(values, mask=mask, copy=True)) + expected = BooleanArray(values, mask) + tm.assert_extension_array_equal(result, expected) + assert result._data is not values + assert result._mask is not mask + + # mixed missing from values and mask + values = [True, False, None, False] + mask = np.array([False, False, False, True], dtype="bool") + result = BooleanArray(*coerce_to_array(values, mask=mask)) + expected = BooleanArray( + np.array([True, False, True, True]), np.array([False, False, True, True]) + ) + tm.assert_extension_array_equal(result, expected) + result = BooleanArray(*coerce_to_array(np.array(values, dtype=object), mask=mask)) + tm.assert_extension_array_equal(result, expected) + result = BooleanArray(*coerce_to_array(values, mask=mask.tolist())) + tm.assert_extension_array_equal(result, expected) + + # raise errors for wrong dimension + values = np.array([True, False, True, False], dtype="bool") + mask = np.array([False, False, False, True], dtype="bool") + + # passing 2D values is OK as long as no mask + coerce_to_array(values.reshape(1, -1)) + + with pytest.raises(ValueError, match="values.shape and mask.shape must match"): + coerce_to_array(values.reshape(1, -1), mask=mask) + + with pytest.raises(ValueError, match="values.shape and mask.shape must match"): + coerce_to_array(values, mask=mask.reshape(1, -1)) + + +def test_coerce_to_array_from_boolean_array(): + # passing BooleanArray to coerce_to_array + values = np.array([True, False, True, False], dtype="bool") + mask = np.array([False, False, False, True], dtype="bool") + arr = BooleanArray(values, mask) + result = BooleanArray(*coerce_to_array(arr)) + tm.assert_extension_array_equal(result, arr) + # no copy + assert result._data is arr._data + assert result._mask is arr._mask + + result = BooleanArray(*coerce_to_array(arr), copy=True) + tm.assert_extension_array_equal(result, arr) + assert result._data is not arr._data + assert result._mask is not arr._mask + + with pytest.raises(ValueError, match="cannot pass mask for BooleanArray input"): + coerce_to_array(arr, mask=mask) + + +def test_coerce_to_numpy_array(): + # with missing values -> object dtype + arr = pd.array([True, False, None], dtype="boolean") + result = np.array(arr) + expected = np.array([True, False, pd.NA], dtype="object") + tm.assert_numpy_array_equal(result, expected) + + # also with no missing values -> object dtype + arr = pd.array([True, False, True], dtype="boolean") + result = np.array(arr) + expected = np.array([True, False, True], dtype="bool") + tm.assert_numpy_array_equal(result, expected) + + # force bool dtype + result = np.array(arr, dtype="bool") + expected = np.array([True, False, True], dtype="bool") + tm.assert_numpy_array_equal(result, expected) + # with missing values will raise error + arr = pd.array([True, False, None], dtype="boolean") + msg = ( + "cannot convert to 'bool'-dtype NumPy array with missing values. " + "Specify an appropriate 'na_value' for this dtype." + ) + with pytest.raises(ValueError, match=msg): + np.array(arr, dtype="bool") + + +def test_to_boolean_array_from_strings(): + result = BooleanArray._from_sequence_of_strings( + np.array(["True", "False", "1", "1.0", "0", "0.0", np.nan], dtype=object), + dtype="boolean", + ) + expected = BooleanArray( + np.array([True, False, True, True, False, False, False]), + np.array([False, False, False, False, False, False, True]), + ) + + tm.assert_extension_array_equal(result, expected) + + +def test_to_boolean_array_from_strings_invalid_string(): + with pytest.raises(ValueError, match="cannot be cast"): + BooleanArray._from_sequence_of_strings(["donkey"], dtype="boolean") + + +@pytest.mark.parametrize("box", [True, False], ids=["series", "array"]) +def test_to_numpy(box): + con = pd.Series if box else pd.array + # default (with or without missing values) -> object dtype + arr = con([True, False, True], dtype="boolean") + result = arr.to_numpy() + expected = np.array([True, False, True], dtype="bool") + tm.assert_numpy_array_equal(result, expected) + + arr = con([True, False, None], dtype="boolean") + result = arr.to_numpy() + expected = np.array([True, False, pd.NA], dtype="object") + tm.assert_numpy_array_equal(result, expected) + + arr = con([True, False, None], dtype="boolean") + result = arr.to_numpy(dtype="str") + expected = np.array([True, False, pd.NA], dtype=f"{tm.ENDIAN}U5") + tm.assert_numpy_array_equal(result, expected) + + # no missing values -> can convert to bool, otherwise raises + arr = con([True, False, True], dtype="boolean") + result = arr.to_numpy(dtype="bool") + expected = np.array([True, False, True], dtype="bool") + tm.assert_numpy_array_equal(result, expected) + + arr = con([True, False, None], dtype="boolean") + with pytest.raises(ValueError, match="cannot convert to 'bool'-dtype"): + result = arr.to_numpy(dtype="bool") + + # specify dtype and na_value + arr = con([True, False, None], dtype="boolean") + result = arr.to_numpy(dtype=object, na_value=None) + expected = np.array([True, False, None], dtype="object") + tm.assert_numpy_array_equal(result, expected) + + result = arr.to_numpy(dtype=bool, na_value=False) + expected = np.array([True, False, False], dtype="bool") + tm.assert_numpy_array_equal(result, expected) + + result = arr.to_numpy(dtype="int64", na_value=-99) + expected = np.array([1, 0, -99], dtype="int64") + tm.assert_numpy_array_equal(result, expected) + + result = arr.to_numpy(dtype="float64", na_value=np.nan) + expected = np.array([1, 0, np.nan], dtype="float64") + tm.assert_numpy_array_equal(result, expected) + + # converting to int or float without specifying na_value raises + with pytest.raises(ValueError, match="cannot convert to 'int64'-dtype"): + arr.to_numpy(dtype="int64") + + +def test_to_numpy_copy(): + # to_numpy can be zero-copy if no missing values + arr = pd.array([True, False, True], dtype="boolean") + result = arr.to_numpy(dtype=bool) + result[0] = False + tm.assert_extension_array_equal( + arr, pd.array([False, False, True], dtype="boolean") + ) + + arr = pd.array([True, False, True], dtype="boolean") + result = arr.to_numpy(dtype=bool, copy=True) + result[0] = False + tm.assert_extension_array_equal(arr, pd.array([True, False, True], dtype="boolean")) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_function.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_function.py new file mode 100644 index 0000000000000000000000000000000000000000..2b3f3d3d16ac6c49d231ac526fa89570975e4bfb --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_function.py @@ -0,0 +1,126 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm + + +@pytest.mark.parametrize( + "ufunc", [np.add, np.logical_or, np.logical_and, np.logical_xor] +) +def test_ufuncs_binary(ufunc): + # two BooleanArrays + a = pd.array([True, False, None], dtype="boolean") + result = ufunc(a, a) + expected = pd.array(ufunc(a._data, a._data), dtype="boolean") + expected[a._mask] = np.nan + tm.assert_extension_array_equal(result, expected) + + s = pd.Series(a) + result = ufunc(s, a) + expected = pd.Series(ufunc(a._data, a._data), dtype="boolean") + expected[a._mask] = np.nan + tm.assert_series_equal(result, expected) + + # Boolean with numpy array + arr = np.array([True, True, False]) + result = ufunc(a, arr) + expected = pd.array(ufunc(a._data, arr), dtype="boolean") + expected[a._mask] = np.nan + tm.assert_extension_array_equal(result, expected) + + result = ufunc(arr, a) + expected = pd.array(ufunc(arr, a._data), dtype="boolean") + expected[a._mask] = np.nan + tm.assert_extension_array_equal(result, expected) + + # BooleanArray with scalar + result = ufunc(a, True) + expected = pd.array(ufunc(a._data, True), dtype="boolean") + expected[a._mask] = np.nan + tm.assert_extension_array_equal(result, expected) + + result = ufunc(True, a) + expected = pd.array(ufunc(True, a._data), dtype="boolean") + expected[a._mask] = np.nan + tm.assert_extension_array_equal(result, expected) + + # not handled types + msg = r"operand type\(s\) all returned NotImplemented from __array_ufunc__" + with pytest.raises(TypeError, match=msg): + ufunc(a, "test") + + +@pytest.mark.parametrize("ufunc", [np.logical_not]) +def test_ufuncs_unary(ufunc): + a = pd.array([True, False, None], dtype="boolean") + result = ufunc(a) + expected = pd.array(ufunc(a._data), dtype="boolean") + expected[a._mask] = np.nan + tm.assert_extension_array_equal(result, expected) + + ser = pd.Series(a) + result = ufunc(ser) + expected = pd.Series(ufunc(a._data), dtype="boolean") + expected[a._mask] = np.nan + tm.assert_series_equal(result, expected) + + +def test_ufunc_numeric(): + # np.sqrt on np.bool_ returns float16, which we upcast to Float32 + # bc we do not have Float16 + arr = pd.array([True, False, None], dtype="boolean") + + res = np.sqrt(arr) + + expected = pd.array([1, 0, None], dtype="Float32") + tm.assert_extension_array_equal(res, expected) + + +@pytest.mark.parametrize("values", [[True, False], [True, None]]) +def test_ufunc_reduce_raises(values): + arr = pd.array(values, dtype="boolean") + + res = np.add.reduce(arr) + if arr[-1] is pd.NA: + expected = pd.NA + else: + expected = arr._data.sum() + tm.assert_almost_equal(res, expected) + + +def test_value_counts_na(): + arr = pd.array([True, False, pd.NA], dtype="boolean") + result = arr.value_counts(dropna=False) + expected = pd.Series([1, 1, 1], index=arr, dtype="Int64", name="count") + assert expected.index.dtype == arr.dtype + tm.assert_series_equal(result, expected) + + result = arr.value_counts(dropna=True) + expected = pd.Series([1, 1], index=arr[:-1], dtype="Int64", name="count") + assert expected.index.dtype == arr.dtype + tm.assert_series_equal(result, expected) + + +def test_value_counts_with_normalize(): + ser = pd.Series([True, False, pd.NA], dtype="boolean") + result = ser.value_counts(normalize=True) + expected = pd.Series([1, 1], index=ser[:-1], dtype="Float64", name="proportion") / 2 + assert expected.index.dtype == "boolean" + tm.assert_series_equal(result, expected) + + +def test_diff(): + a = pd.array( + [True, True, False, False, True, None, True, None, False], dtype="boolean" + ) + result = pd.core.algorithms.diff(a, 1) + expected = pd.array( + [None, False, True, False, True, None, None, None, None], dtype="boolean" + ) + tm.assert_extension_array_equal(result, expected) + + ser = pd.Series(a) + result = ser.diff() + expected = pd.Series(expected) + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_indexing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_indexing.py new file mode 100644 index 0000000000000000000000000000000000000000..6a7daea16963c99fb7c4bbcd4b122d6af53d2576 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_indexing.py @@ -0,0 +1,13 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm + + +@pytest.mark.parametrize("na", [None, np.nan, pd.NA]) +def test_setitem_missing_values(na): + arr = pd.array([True, False, None], dtype="boolean") + expected = pd.array([True, None, None], dtype="boolean") + arr[1] = na + tm.assert_extension_array_equal(arr, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_logical.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_logical.py new file mode 100644 index 0000000000000000000000000000000000000000..66c117ea3fc66cbc5f847cc96c23e80a98329c5d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_logical.py @@ -0,0 +1,254 @@ +import operator + +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm +from pandas.arrays import BooleanArray +from pandas.core.ops.mask_ops import ( + kleene_and, + kleene_or, + kleene_xor, +) +from pandas.tests.extension.base import BaseOpsUtil + + +class TestLogicalOps(BaseOpsUtil): + def test_numpy_scalars_ok(self, all_logical_operators): + a = pd.array([True, False, None], dtype="boolean") + op = getattr(a, all_logical_operators) + + tm.assert_extension_array_equal(op(True), op(np.bool_(True))) + tm.assert_extension_array_equal(op(False), op(np.bool_(False))) + + def get_op_from_name(self, op_name): + short_opname = op_name.strip("_") + short_opname = short_opname if "xor" in short_opname else short_opname + "_" + try: + op = getattr(operator, short_opname) + except AttributeError: + # Assume it is the reverse operator + rop = getattr(operator, short_opname[1:]) + op = lambda x, y: rop(y, x) + + return op + + def test_empty_ok(self, all_logical_operators): + a = pd.array([], dtype="boolean") + op_name = all_logical_operators + result = getattr(a, op_name)(True) + tm.assert_extension_array_equal(a, result) + + result = getattr(a, op_name)(False) + tm.assert_extension_array_equal(a, result) + + result = getattr(a, op_name)(pd.NA) + tm.assert_extension_array_equal(a, result) + + @pytest.mark.parametrize( + "other", ["a", pd.Timestamp(2017, 1, 1, 12), np.timedelta64(4)] + ) + def test_eq_mismatched_type(self, other): + # GH-44499 + arr = pd.array([True, False]) + result = arr == other + expected = pd.array([False, False]) + tm.assert_extension_array_equal(result, expected) + + result = arr != other + expected = pd.array([True, True]) + tm.assert_extension_array_equal(result, expected) + + def test_logical_length_mismatch_raises(self, all_logical_operators): + op_name = all_logical_operators + a = pd.array([True, False, None], dtype="boolean") + msg = "Lengths must match" + + with pytest.raises(ValueError, match=msg): + getattr(a, op_name)([True, False]) + + with pytest.raises(ValueError, match=msg): + getattr(a, op_name)(np.array([True, False])) + + with pytest.raises(ValueError, match=msg): + getattr(a, op_name)(pd.array([True, False], dtype="boolean")) + + def test_logical_nan_raises(self, all_logical_operators): + op_name = all_logical_operators + a = pd.array([True, False, None], dtype="boolean") + msg = "Got float instead" + + with pytest.raises(TypeError, match=msg): + getattr(a, op_name)(np.nan) + + @pytest.mark.parametrize("other", ["a", 1]) + def test_non_bool_or_na_other_raises(self, other, all_logical_operators): + a = pd.array([True, False], dtype="boolean") + with pytest.raises(TypeError, match=str(type(other).__name__)): + getattr(a, all_logical_operators)(other) + + def test_kleene_or(self): + # A clear test of behavior. + a = pd.array([True] * 3 + [False] * 3 + [None] * 3, dtype="boolean") + b = pd.array([True, False, None] * 3, dtype="boolean") + result = a | b + expected = pd.array( + [True, True, True, True, False, None, True, None, None], dtype="boolean" + ) + tm.assert_extension_array_equal(result, expected) + + result = b | a + tm.assert_extension_array_equal(result, expected) + + # ensure we haven't mutated anything inplace + tm.assert_extension_array_equal( + a, pd.array([True] * 3 + [False] * 3 + [None] * 3, dtype="boolean") + ) + tm.assert_extension_array_equal( + b, pd.array([True, False, None] * 3, dtype="boolean") + ) + + @pytest.mark.parametrize( + "other, expected", + [ + (pd.NA, [True, None, None]), + (True, [True, True, True]), + (np.bool_(True), [True, True, True]), + (False, [True, False, None]), + (np.bool_(False), [True, False, None]), + ], + ) + def test_kleene_or_scalar(self, other, expected): + # TODO: test True & False + a = pd.array([True, False, None], dtype="boolean") + result = a | other + expected = pd.array(expected, dtype="boolean") + tm.assert_extension_array_equal(result, expected) + + result = other | a + tm.assert_extension_array_equal(result, expected) + + # ensure we haven't mutated anything inplace + tm.assert_extension_array_equal( + a, pd.array([True, False, None], dtype="boolean") + ) + + def test_kleene_and(self): + # A clear test of behavior. + a = pd.array([True] * 3 + [False] * 3 + [None] * 3, dtype="boolean") + b = pd.array([True, False, None] * 3, dtype="boolean") + result = a & b + expected = pd.array( + [True, False, None, False, False, False, None, False, None], dtype="boolean" + ) + tm.assert_extension_array_equal(result, expected) + + result = b & a + tm.assert_extension_array_equal(result, expected) + + # ensure we haven't mutated anything inplace + tm.assert_extension_array_equal( + a, pd.array([True] * 3 + [False] * 3 + [None] * 3, dtype="boolean") + ) + tm.assert_extension_array_equal( + b, pd.array([True, False, None] * 3, dtype="boolean") + ) + + @pytest.mark.parametrize( + "other, expected", + [ + (pd.NA, [None, False, None]), + (True, [True, False, None]), + (False, [False, False, False]), + (np.bool_(True), [True, False, None]), + (np.bool_(False), [False, False, False]), + ], + ) + def test_kleene_and_scalar(self, other, expected): + a = pd.array([True, False, None], dtype="boolean") + result = a & other + expected = pd.array(expected, dtype="boolean") + tm.assert_extension_array_equal(result, expected) + + result = other & a + tm.assert_extension_array_equal(result, expected) + + # ensure we haven't mutated anything inplace + tm.assert_extension_array_equal( + a, pd.array([True, False, None], dtype="boolean") + ) + + def test_kleene_xor(self): + a = pd.array([True] * 3 + [False] * 3 + [None] * 3, dtype="boolean") + b = pd.array([True, False, None] * 3, dtype="boolean") + result = a ^ b + expected = pd.array( + [False, True, None, True, False, None, None, None, None], dtype="boolean" + ) + tm.assert_extension_array_equal(result, expected) + + result = b ^ a + tm.assert_extension_array_equal(result, expected) + + # ensure we haven't mutated anything inplace + tm.assert_extension_array_equal( + a, pd.array([True] * 3 + [False] * 3 + [None] * 3, dtype="boolean") + ) + tm.assert_extension_array_equal( + b, pd.array([True, False, None] * 3, dtype="boolean") + ) + + @pytest.mark.parametrize( + "other, expected", + [ + (pd.NA, [None, None, None]), + (True, [False, True, None]), + (np.bool_(True), [False, True, None]), + (np.bool_(False), [True, False, None]), + ], + ) + def test_kleene_xor_scalar(self, other, expected): + a = pd.array([True, False, None], dtype="boolean") + result = a ^ other + expected = pd.array(expected, dtype="boolean") + tm.assert_extension_array_equal(result, expected) + + result = other ^ a + tm.assert_extension_array_equal(result, expected) + + # ensure we haven't mutated anything inplace + tm.assert_extension_array_equal( + a, pd.array([True, False, None], dtype="boolean") + ) + + @pytest.mark.parametrize("other", [True, False, pd.NA, [True, False, None] * 3]) + def test_no_masked_assumptions(self, other, all_logical_operators): + # The logical operations should not assume that masked values are False! + a = pd.arrays.BooleanArray( + np.array([True, True, True, False, False, False, True, False, True]), + np.array([False] * 6 + [True, True, True]), + ) + b = pd.array([True] * 3 + [False] * 3 + [None] * 3, dtype="boolean") + if isinstance(other, list): + other = pd.array(other, dtype="boolean") + + result = getattr(a, all_logical_operators)(other) + expected = getattr(b, all_logical_operators)(other) + tm.assert_extension_array_equal(result, expected) + + if isinstance(other, BooleanArray): + other._data[other._mask] = True + a._data[a._mask] = False + + result = getattr(a, all_logical_operators)(other) + expected = getattr(b, all_logical_operators)(other) + tm.assert_extension_array_equal(result, expected) + + +@pytest.mark.parametrize("operation", [kleene_or, kleene_xor, kleene_and]) +def test_error_both_scalar(operation): + msg = r"Either `left` or `right` need to be a np\.ndarray." + with pytest.raises(TypeError, match=msg): + # masks need to be non-None, otherwise it ends up in an infinite recursion + operation(True, True, np.zeros(1), np.zeros(1)) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_ops.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_ops.py new file mode 100644 index 0000000000000000000000000000000000000000..95ebe8528c2e5fec1a580b00bd79e0617fe7609f --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_ops.py @@ -0,0 +1,27 @@ +import pandas as pd +import pandas._testing as tm + + +class TestUnaryOps: + def test_invert(self): + a = pd.array([True, False, None], dtype="boolean") + expected = pd.array([False, True, None], dtype="boolean") + tm.assert_extension_array_equal(~a, expected) + + expected = pd.Series(expected, index=["a", "b", "c"], name="name") + result = ~pd.Series(a, index=["a", "b", "c"], name="name") + tm.assert_series_equal(result, expected) + + df = pd.DataFrame({"A": a, "B": [True, False, False]}, index=["a", "b", "c"]) + result = ~df + expected = pd.DataFrame( + {"A": expected, "B": [False, True, True]}, index=["a", "b", "c"] + ) + tm.assert_frame_equal(result, expected) + + def test_abs(self): + # matching numpy behavior, abs is the identity function + arr = pd.array([True, False, None], dtype="boolean") + result = abs(arr) + + tm.assert_extension_array_equal(result, arr) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_reduction.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_reduction.py new file mode 100644 index 0000000000000000000000000000000000000000..dd8c3eda9ed05b6844c90024631a1e90f755069e --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_reduction.py @@ -0,0 +1,62 @@ +import numpy as np +import pytest + +import pandas as pd + + +@pytest.fixture +def data(): + """Fixture returning boolean array, with valid and missing values.""" + return pd.array( + [True, False] * 4 + [np.nan] + [True, False] * 44 + [np.nan] + [True, False], + dtype="boolean", + ) + + +@pytest.mark.parametrize( + "values, exp_any, exp_all, exp_any_noskip, exp_all_noskip", + [ + ([True, pd.NA], True, True, True, pd.NA), + ([False, pd.NA], False, False, pd.NA, False), + ([pd.NA], False, True, pd.NA, pd.NA), + ([], False, True, False, True), + # GH-33253: all True / all False values buggy with skipna=False + ([True, True], True, True, True, True), + ([False, False], False, False, False, False), + ], +) +def test_any_all(values, exp_any, exp_all, exp_any_noskip, exp_all_noskip): + # the methods return numpy scalars + exp_any = pd.NA if exp_any is pd.NA else np.bool_(exp_any) + exp_all = pd.NA if exp_all is pd.NA else np.bool_(exp_all) + exp_any_noskip = pd.NA if exp_any_noskip is pd.NA else np.bool_(exp_any_noskip) + exp_all_noskip = pd.NA if exp_all_noskip is pd.NA else np.bool_(exp_all_noskip) + + for con in [pd.array, pd.Series]: + a = con(values, dtype="boolean") + assert a.any() is exp_any + assert a.all() is exp_all + assert a.any(skipna=False) is exp_any_noskip + assert a.all(skipna=False) is exp_all_noskip + + assert np.any(a.any()) is exp_any + assert np.all(a.all()) is exp_all + + +@pytest.mark.parametrize("dropna", [True, False]) +def test_reductions_return_types(dropna, data, all_numeric_reductions): + op = all_numeric_reductions + s = pd.Series(data) + if dropna: + s = s.dropna() + + if op in ("sum", "prod"): + assert isinstance(getattr(s, op)(), np.int_) + elif op == "count": + # Oddly on the 32 bit build (but not Windows), this is intc (!= intp) + assert isinstance(getattr(s, op)(), np.integer) + elif op in ("min", "max"): + assert isinstance(getattr(s, op)(), np.bool_) + else: + # "mean", "std", "var", "median", "kurt", "skew" + assert isinstance(getattr(s, op)(), np.float64) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_repr.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_repr.py new file mode 100644 index 0000000000000000000000000000000000000000..0ee904b18cc9ec6197ed3ad009fae1da593c5219 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/boolean/test_repr.py @@ -0,0 +1,13 @@ +import pandas as pd + + +def test_repr(): + df = pd.DataFrame({"A": pd.array([True, False, None], dtype="boolean")}) + expected = " A\n0 True\n1 False\n2 " + assert repr(df) == expected + + expected = "0 True\n1 False\n2 \nName: A, dtype: boolean" + assert repr(df.A) == expected + + expected = "\n[True, False, ]\nLength: 3, dtype: boolean" + assert repr(df.A.array) == expected diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_algos.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_algos.py new file mode 100644 index 0000000000000000000000000000000000000000..d4c19a4970135cfb1865eaa0fae0845dc7d17971 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_algos.py @@ -0,0 +1,89 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm + + +@pytest.mark.parametrize("ordered", [True, False]) +@pytest.mark.parametrize("categories", [["b", "a", "c"], ["a", "b", "c", "d"]]) +def test_factorize(categories, ordered): + cat = pd.Categorical( + ["b", "b", "a", "c", None], categories=categories, ordered=ordered + ) + codes, uniques = pd.factorize(cat) + expected_codes = np.array([0, 0, 1, 2, -1], dtype=np.intp) + expected_uniques = pd.Categorical( + ["b", "a", "c"], categories=categories, ordered=ordered + ) + + tm.assert_numpy_array_equal(codes, expected_codes) + tm.assert_categorical_equal(uniques, expected_uniques) + + +def test_factorized_sort(): + cat = pd.Categorical(["b", "b", None, "a"]) + codes, uniques = pd.factorize(cat, sort=True) + expected_codes = np.array([1, 1, -1, 0], dtype=np.intp) + expected_uniques = pd.Categorical(["a", "b"]) + + tm.assert_numpy_array_equal(codes, expected_codes) + tm.assert_categorical_equal(uniques, expected_uniques) + + +def test_factorized_sort_ordered(): + cat = pd.Categorical( + ["b", "b", None, "a"], categories=["c", "b", "a"], ordered=True + ) + + codes, uniques = pd.factorize(cat, sort=True) + expected_codes = np.array([0, 0, -1, 1], dtype=np.intp) + expected_uniques = pd.Categorical( + ["b", "a"], categories=["c", "b", "a"], ordered=True + ) + + tm.assert_numpy_array_equal(codes, expected_codes) + tm.assert_categorical_equal(uniques, expected_uniques) + + +def test_isin_cats(): + # GH2003 + cat = pd.Categorical(["a", "b", np.nan]) + + result = cat.isin(["a", np.nan]) + expected = np.array([True, False, True], dtype=bool) + tm.assert_numpy_array_equal(expected, result) + + result = cat.isin(["a", "c"]) + expected = np.array([True, False, False], dtype=bool) + tm.assert_numpy_array_equal(expected, result) + + +@pytest.mark.parametrize("value", [[""], [None, ""], [pd.NaT, ""]]) +def test_isin_cats_corner_cases(value): + # GH36550 + cat = pd.Categorical([""]) + result = cat.isin(value) + expected = np.array([True], dtype=bool) + tm.assert_numpy_array_equal(expected, result) + + +@pytest.mark.parametrize("empty", [[], pd.Series(dtype=object), np.array([])]) +def test_isin_empty(empty): + s = pd.Categorical(["a", "b"]) + expected = np.array([False, False], dtype=bool) + + result = s.isin(empty) + tm.assert_numpy_array_equal(expected, result) + + +def test_diff(): + ser = pd.Series([1, 2, 3], dtype="category") + + msg = "Convert to a suitable dtype" + with pytest.raises(TypeError, match=msg): + ser.diff() + + df = ser.to_frame(name="A") + with pytest.raises(TypeError, match=msg): + df.diff() diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_analytics.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_analytics.py new file mode 100644 index 0000000000000000000000000000000000000000..9a0356cbc422bc534b0cef5aad79ba304e7a77b2 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_analytics.py @@ -0,0 +1,355 @@ +import re +import sys + +import numpy as np +import pytest + +from pandas.compat import PYPY + +from pandas import ( + Categorical, + CategoricalDtype, + DataFrame, + Index, + NaT, + Series, + date_range, +) +import pandas._testing as tm +from pandas.api.types import is_scalar + + +class TestCategoricalAnalytics: + @pytest.mark.parametrize("aggregation", ["min", "max"]) + def test_min_max_not_ordered_raises(self, aggregation): + # unordered cats have no min/max + cat = Categorical(["a", "b", "c", "d"], ordered=False) + msg = f"Categorical is not ordered for operation {aggregation}" + agg_func = getattr(cat, aggregation) + + with pytest.raises(TypeError, match=msg): + agg_func() + + ufunc = np.minimum if aggregation == "min" else np.maximum + with pytest.raises(TypeError, match=msg): + ufunc.reduce(cat) + + def test_min_max_ordered(self, index_or_series_or_array): + cat = Categorical(["a", "b", "c", "d"], ordered=True) + obj = index_or_series_or_array(cat) + _min = obj.min() + _max = obj.max() + assert _min == "a" + assert _max == "d" + + assert np.minimum.reduce(obj) == "a" + assert np.maximum.reduce(obj) == "d" + # TODO: raises if we pass axis=0 (on Index and Categorical, not Series) + + cat = Categorical( + ["a", "b", "c", "d"], categories=["d", "c", "b", "a"], ordered=True + ) + obj = index_or_series_or_array(cat) + _min = obj.min() + _max = obj.max() + assert _min == "d" + assert _max == "a" + assert np.minimum.reduce(obj) == "d" + assert np.maximum.reduce(obj) == "a" + + def test_min_max_reduce(self): + # GH52788 + cat = Categorical(["a", "b", "c", "d"], ordered=True) + df = DataFrame(cat) + + result_max = df.agg("max") + expected_max = Series(Categorical(["d"], dtype=cat.dtype)) + tm.assert_series_equal(result_max, expected_max) + + result_min = df.agg("min") + expected_min = Series(Categorical(["a"], dtype=cat.dtype)) + tm.assert_series_equal(result_min, expected_min) + + @pytest.mark.parametrize( + "categories,expected", + [ + (list("ABC"), np.nan), + ([1, 2, 3], np.nan), + pytest.param( + Series(date_range("2020-01-01", periods=3), dtype="category"), + NaT, + marks=pytest.mark.xfail( + reason="https://github.com/pandas-dev/pandas/issues/29962" + ), + ), + ], + ) + @pytest.mark.parametrize("aggregation", ["min", "max"]) + def test_min_max_ordered_empty(self, categories, expected, aggregation): + # GH 30227 + cat = Categorical([], categories=categories, ordered=True) + + agg_func = getattr(cat, aggregation) + result = agg_func() + assert result is expected + + @pytest.mark.parametrize( + "values, categories", + [(["a", "b", "c", np.nan], list("cba")), ([1, 2, 3, np.nan], [3, 2, 1])], + ) + @pytest.mark.parametrize("skipna", [True, False]) + @pytest.mark.parametrize("function", ["min", "max"]) + def test_min_max_with_nan(self, values, categories, function, skipna): + # GH 25303 + cat = Categorical(values, categories=categories, ordered=True) + result = getattr(cat, function)(skipna=skipna) + + if skipna is False: + assert result is np.nan + else: + expected = categories[0] if function == "min" else categories[2] + assert result == expected + + @pytest.mark.parametrize("function", ["min", "max"]) + @pytest.mark.parametrize("skipna", [True, False]) + def test_min_max_only_nan(self, function, skipna): + # https://github.com/pandas-dev/pandas/issues/33450 + cat = Categorical([np.nan], categories=[1, 2], ordered=True) + result = getattr(cat, function)(skipna=skipna) + assert result is np.nan + + @pytest.mark.parametrize("method", ["min", "max"]) + def test_numeric_only_min_max_raises(self, method): + # GH 25303 + cat = Categorical( + [np.nan, 1, 2, np.nan], categories=[5, 4, 3, 2, 1], ordered=True + ) + with pytest.raises(TypeError, match=".* got an unexpected keyword"): + getattr(cat, method)(numeric_only=True) + + @pytest.mark.parametrize("method", ["min", "max"]) + def test_numpy_min_max_raises(self, method): + cat = Categorical(["a", "b", "c", "b"], ordered=False) + msg = ( + f"Categorical is not ordered for operation {method}\n" + "you can use .as_ordered() to change the Categorical to an ordered one" + ) + method = getattr(np, method) + with pytest.raises(TypeError, match=re.escape(msg)): + method(cat) + + @pytest.mark.parametrize("kwarg", ["axis", "out", "keepdims"]) + @pytest.mark.parametrize("method", ["min", "max"]) + def test_numpy_min_max_unsupported_kwargs_raises(self, method, kwarg): + cat = Categorical(["a", "b", "c", "b"], ordered=True) + msg = ( + f"the '{kwarg}' parameter is not supported in the pandas implementation " + f"of {method}" + ) + if kwarg == "axis": + msg = r"`axis` must be fewer than the number of dimensions \(1\)" + kwargs = {kwarg: 42} + method = getattr(np, method) + with pytest.raises(ValueError, match=msg): + method(cat, **kwargs) + + @pytest.mark.parametrize("method, expected", [("min", "a"), ("max", "c")]) + def test_numpy_min_max_axis_equals_none(self, method, expected): + cat = Categorical(["a", "b", "c", "b"], ordered=True) + method = getattr(np, method) + result = method(cat, axis=None) + assert result == expected + + @pytest.mark.parametrize( + "values,categories,exp_mode", + [ + ([1, 1, 2, 4, 5, 5, 5], [5, 4, 3, 2, 1], [5]), + ([1, 1, 1, 4, 5, 5, 5], [5, 4, 3, 2, 1], [5, 1]), + ([1, 2, 3, 4, 5], [5, 4, 3, 2, 1], [5, 4, 3, 2, 1]), + ([np.nan, np.nan, np.nan, 4, 5], [5, 4, 3, 2, 1], [5, 4]), + ([np.nan, np.nan, np.nan, 4, 5, 4], [5, 4, 3, 2, 1], [4]), + ([np.nan, np.nan, 4, 5, 4], [5, 4, 3, 2, 1], [4]), + ], + ) + def test_mode(self, values, categories, exp_mode): + cat = Categorical(values, categories=categories, ordered=True) + res = Series(cat).mode()._values + exp = Categorical(exp_mode, categories=categories, ordered=True) + tm.assert_categorical_equal(res, exp) + + def test_searchsorted(self, ordered): + # https://github.com/pandas-dev/pandas/issues/8420 + # https://github.com/pandas-dev/pandas/issues/14522 + + cat = Categorical( + ["cheese", "milk", "apple", "bread", "bread"], + categories=["cheese", "milk", "apple", "bread"], + ordered=ordered, + ) + ser = Series(cat) + + # Searching for single item argument, side='left' (default) + res_cat = cat.searchsorted("apple") + assert res_cat == 2 + assert is_scalar(res_cat) + + res_ser = ser.searchsorted("apple") + assert res_ser == 2 + assert is_scalar(res_ser) + + # Searching for single item array, side='left' (default) + res_cat = cat.searchsorted(["bread"]) + res_ser = ser.searchsorted(["bread"]) + exp = np.array([3], dtype=np.intp) + tm.assert_numpy_array_equal(res_cat, exp) + tm.assert_numpy_array_equal(res_ser, exp) + + # Searching for several items array, side='right' + res_cat = cat.searchsorted(["apple", "bread"], side="right") + res_ser = ser.searchsorted(["apple", "bread"], side="right") + exp = np.array([3, 5], dtype=np.intp) + tm.assert_numpy_array_equal(res_cat, exp) + tm.assert_numpy_array_equal(res_ser, exp) + + # Searching for a single value that is not from the Categorical + with pytest.raises(TypeError, match="cucumber"): + cat.searchsorted("cucumber") + with pytest.raises(TypeError, match="cucumber"): + ser.searchsorted("cucumber") + + # Searching for multiple values one of each is not from the Categorical + msg = ( + "Cannot setitem on a Categorical with a new category, " + "set the categories first" + ) + with pytest.raises(TypeError, match=msg): + cat.searchsorted(["bread", "cucumber"]) + with pytest.raises(TypeError, match=msg): + ser.searchsorted(["bread", "cucumber"]) + + def test_unique(self, ordered): + # GH38140 + dtype = CategoricalDtype(["a", "b", "c"], ordered=ordered) + + # categories are reordered based on value when ordered=False + cat = Categorical(["a", "b", "c"], dtype=dtype) + res = cat.unique() + tm.assert_categorical_equal(res, cat) + + cat = Categorical(["a", "b", "a", "a"], dtype=dtype) + res = cat.unique() + tm.assert_categorical_equal(res, Categorical(["a", "b"], dtype=dtype)) + + cat = Categorical(["c", "a", "b", "a", "a"], dtype=dtype) + res = cat.unique() + exp_cat = Categorical(["c", "a", "b"], dtype=dtype) + tm.assert_categorical_equal(res, exp_cat) + + # nan must be removed + cat = Categorical(["b", np.nan, "b", np.nan, "a"], dtype=dtype) + res = cat.unique() + exp_cat = Categorical(["b", np.nan, "a"], dtype=dtype) + tm.assert_categorical_equal(res, exp_cat) + + def test_unique_index_series(self, ordered): + # GH38140 + dtype = CategoricalDtype([3, 2, 1], ordered=ordered) + + c = Categorical([3, 1, 2, 2, 1], dtype=dtype) + # Categorical.unique sorts categories by appearance order + # if ordered=False + exp = Categorical([3, 1, 2], dtype=dtype) + tm.assert_categorical_equal(c.unique(), exp) + + tm.assert_index_equal(Index(c).unique(), Index(exp)) + tm.assert_categorical_equal(Series(c).unique(), exp) + + c = Categorical([1, 1, 2, 2], dtype=dtype) + exp = Categorical([1, 2], dtype=dtype) + tm.assert_categorical_equal(c.unique(), exp) + tm.assert_index_equal(Index(c).unique(), Index(exp)) + tm.assert_categorical_equal(Series(c).unique(), exp) + + def test_shift(self): + # GH 9416 + cat = Categorical(["a", "b", "c", "d", "a"]) + + # shift forward + sp1 = cat.shift(1) + xp1 = Categorical([np.nan, "a", "b", "c", "d"]) + tm.assert_categorical_equal(sp1, xp1) + tm.assert_categorical_equal(cat[:-1], sp1[1:]) + + # shift back + sn2 = cat.shift(-2) + xp2 = Categorical( + ["c", "d", "a", np.nan, np.nan], categories=["a", "b", "c", "d"] + ) + tm.assert_categorical_equal(sn2, xp2) + tm.assert_categorical_equal(cat[2:], sn2[:-2]) + + # shift by zero + tm.assert_categorical_equal(cat, cat.shift(0)) + + def test_nbytes(self): + cat = Categorical([1, 2, 3]) + exp = 3 + 3 * 8 # 3 int8s for values + 3 int64s for categories + assert cat.nbytes == exp + + def test_memory_usage(self, using_infer_string): + cat = Categorical([1, 2, 3]) + + # .categories is an index, so we include the hashtable + assert 0 < cat.nbytes <= cat.memory_usage() + assert 0 < cat.nbytes <= cat.memory_usage(deep=True) + + cat = Categorical(["foo", "foo", "bar"]) + if using_infer_string: + if cat.categories.dtype.storage == "python": + assert cat.memory_usage(deep=True) > cat.nbytes + else: + assert cat.memory_usage(deep=True) >= cat.nbytes + else: + assert cat.memory_usage(deep=True) > cat.nbytes + + if not PYPY: + # sys.getsizeof will call the .memory_usage with + # deep=True, and add on some GC overhead + diff = cat.memory_usage(deep=True) - sys.getsizeof(cat) + assert abs(diff) < 100 + + def test_map(self): + c = Categorical(list("ABABC"), categories=list("CBA"), ordered=True) + result = c.map(lambda x: x.lower(), na_action=None) + exp = Categorical(list("ababc"), categories=list("cba"), ordered=True) + tm.assert_categorical_equal(result, exp) + + c = Categorical(list("ABABC"), categories=list("ABC"), ordered=False) + result = c.map(lambda x: x.lower(), na_action=None) + exp = Categorical(list("ababc"), categories=list("abc"), ordered=False) + tm.assert_categorical_equal(result, exp) + + result = c.map(lambda x: 1, na_action=None) + # GH 12766: Return an index not an array + tm.assert_index_equal(result, Index(np.array([1] * 5, dtype=np.int64))) + + @pytest.mark.parametrize("value", [1, "True", [1, 2, 3], 5.0]) + def test_validate_inplace_raises(self, value): + cat = Categorical(["A", "B", "B", "C", "A"]) + msg = ( + 'For argument "inplace" expected type bool, ' + f"received type {type(value).__name__}" + ) + + with pytest.raises(ValueError, match=msg): + cat.sort_values(inplace=value) + + def test_quantile_empty(self): + # make sure we have correct itemsize on resulting codes + cat = Categorical(["A", "B"]) + idx = Index([0.0, 0.5]) + result = cat[:0]._quantile(idx, interpolation="linear") + assert result._codes.dtype == np.int8 + + expected = cat.take([-1, -1], allow_fill=True) + tm.assert_extension_array_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_api.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_api.py new file mode 100644 index 0000000000000000000000000000000000000000..a939ee5f6f53f805211d46773c625c8361203991 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_api.py @@ -0,0 +1,501 @@ +import re + +import numpy as np +import pytest + +from pandas.compat import PY311 + +from pandas import ( + Categorical, + CategoricalIndex, + DataFrame, + Index, + Series, + StringDtype, +) +import pandas._testing as tm +from pandas.core.arrays.categorical import recode_for_categories + + +class TestCategoricalAPI: + def test_to_list_deprecated(self): + # GH#51254 + cat1 = Categorical(list("acb"), ordered=False) + msg = "Categorical.to_list is deprecated and will be removed" + with tm.assert_produces_warning(FutureWarning, match=msg): + cat1.to_list() + + def test_ordered_api(self): + # GH 9347 + cat1 = Categorical(list("acb"), ordered=False) + tm.assert_index_equal(cat1.categories, Index(["a", "b", "c"])) + assert not cat1.ordered + + cat2 = Categorical(list("acb"), categories=list("bca"), ordered=False) + tm.assert_index_equal(cat2.categories, Index(["b", "c", "a"])) + assert not cat2.ordered + + cat3 = Categorical(list("acb"), ordered=True) + tm.assert_index_equal(cat3.categories, Index(["a", "b", "c"])) + assert cat3.ordered + + cat4 = Categorical(list("acb"), categories=list("bca"), ordered=True) + tm.assert_index_equal(cat4.categories, Index(["b", "c", "a"])) + assert cat4.ordered + + def test_set_ordered(self): + cat = Categorical(["a", "b", "c", "a"], ordered=True) + cat2 = cat.as_unordered() + assert not cat2.ordered + cat2 = cat.as_ordered() + assert cat2.ordered + + assert cat2.set_ordered(True).ordered + assert not cat2.set_ordered(False).ordered + + # removed in 0.19.0 + msg = ( + "property 'ordered' of 'Categorical' object has no setter" + if PY311 + else "can't set attribute" + ) + with pytest.raises(AttributeError, match=msg): + cat.ordered = True + with pytest.raises(AttributeError, match=msg): + cat.ordered = False + + def test_rename_categories(self): + cat = Categorical(["a", "b", "c", "a"]) + + # inplace=False: the old one must not be changed + res = cat.rename_categories([1, 2, 3]) + tm.assert_numpy_array_equal( + res.__array__(), np.array([1, 2, 3, 1], dtype=np.int64) + ) + tm.assert_index_equal(res.categories, Index([1, 2, 3])) + + exp_cat = np.array(["a", "b", "c", "a"], dtype=np.object_) + tm.assert_numpy_array_equal(cat.__array__(), exp_cat) + + exp_cat = Index(["a", "b", "c"]) + tm.assert_index_equal(cat.categories, exp_cat) + + # GH18862 (let rename_categories take callables) + result = cat.rename_categories(lambda x: x.upper()) + expected = Categorical(["A", "B", "C", "A"]) + tm.assert_categorical_equal(result, expected) + + @pytest.mark.parametrize("new_categories", [[1, 2, 3, 4], [1, 2]]) + def test_rename_categories_wrong_length_raises(self, new_categories): + cat = Categorical(["a", "b", "c", "a"]) + msg = ( + "new categories need to have the same number of items as the " + "old categories!" + ) + with pytest.raises(ValueError, match=msg): + cat.rename_categories(new_categories) + + def test_rename_categories_series(self): + # https://github.com/pandas-dev/pandas/issues/17981 + c = Categorical(["a", "b"]) + result = c.rename_categories(Series([0, 1], index=["a", "b"])) + expected = Categorical([0, 1]) + tm.assert_categorical_equal(result, expected) + + def test_rename_categories_dict(self): + # GH 17336 + cat = Categorical(["a", "b", "c", "d"]) + res = cat.rename_categories({"a": 4, "b": 3, "c": 2, "d": 1}) + expected = Index([4, 3, 2, 1]) + tm.assert_index_equal(res.categories, expected) + + # Test for dicts of smaller length + cat = Categorical(["a", "b", "c", "d"]) + res = cat.rename_categories({"a": 1, "c": 3}) + + expected = Index([1, "b", 3, "d"]) + tm.assert_index_equal(res.categories, expected) + + # Test for dicts with bigger length + cat = Categorical(["a", "b", "c", "d"]) + res = cat.rename_categories({"a": 1, "b": 2, "c": 3, "d": 4, "e": 5, "f": 6}) + expected = Index([1, 2, 3, 4]) + tm.assert_index_equal(res.categories, expected) + + # Test for dicts with no items from old categories + cat = Categorical(["a", "b", "c", "d"]) + res = cat.rename_categories({"f": 1, "g": 3}) + + expected = Index(["a", "b", "c", "d"]) + tm.assert_index_equal(res.categories, expected) + + def test_reorder_categories(self): + cat = Categorical(["a", "b", "c", "a"], ordered=True) + old = cat.copy() + new = Categorical( + ["a", "b", "c", "a"], categories=["c", "b", "a"], ordered=True + ) + + res = cat.reorder_categories(["c", "b", "a"]) + # cat must be the same as before + tm.assert_categorical_equal(cat, old) + # only res is changed + tm.assert_categorical_equal(res, new) + + @pytest.mark.parametrize( + "new_categories", + [ + ["a"], # not all "old" included in "new" + ["a", "b", "d"], # still not all "old" in "new" + ["a", "b", "c", "d"], # all "old" included in "new", but too long + ], + ) + def test_reorder_categories_raises(self, new_categories): + cat = Categorical(["a", "b", "c", "a"], ordered=True) + msg = "items in new_categories are not the same as in old categories" + with pytest.raises(ValueError, match=msg): + cat.reorder_categories(new_categories) + + def test_add_categories(self): + cat = Categorical(["a", "b", "c", "a"], ordered=True) + old = cat.copy() + new = Categorical( + ["a", "b", "c", "a"], categories=["a", "b", "c", "d"], ordered=True + ) + + res = cat.add_categories("d") + tm.assert_categorical_equal(cat, old) + tm.assert_categorical_equal(res, new) + + res = cat.add_categories(["d"]) + tm.assert_categorical_equal(cat, old) + tm.assert_categorical_equal(res, new) + + # GH 9927 + cat = Categorical(list("abc"), ordered=True) + expected = Categorical(list("abc"), categories=list("abcde"), ordered=True) + # test with Series, np.array, index, list + res = cat.add_categories(Series(["d", "e"])) + tm.assert_categorical_equal(res, expected) + res = cat.add_categories(np.array(["d", "e"])) + tm.assert_categorical_equal(res, expected) + res = cat.add_categories(Index(["d", "e"])) + tm.assert_categorical_equal(res, expected) + res = cat.add_categories(["d", "e"]) + tm.assert_categorical_equal(res, expected) + + def test_add_categories_existing_raises(self): + # new is in old categories + cat = Categorical(["a", "b", "c", "d"], ordered=True) + msg = re.escape("new categories must not include old categories: {'d'}") + with pytest.raises(ValueError, match=msg): + cat.add_categories(["d"]) + + def test_add_categories_losing_dtype_information(self): + # GH#48812 + cat = Categorical(Series([1, 2], dtype="Int64")) + ser = Series([4], dtype="Int64") + result = cat.add_categories(ser) + expected = Categorical( + Series([1, 2], dtype="Int64"), categories=Series([1, 2, 4], dtype="Int64") + ) + tm.assert_categorical_equal(result, expected) + + cat = Categorical(Series(["a", "b", "a"], dtype=StringDtype())) + ser = Series(["d"], dtype=StringDtype()) + result = cat.add_categories(ser) + expected = Categorical( + Series(["a", "b", "a"], dtype=StringDtype()), + categories=Series(["a", "b", "d"], dtype=StringDtype()), + ) + tm.assert_categorical_equal(result, expected) + + def test_set_categories(self): + cat = Categorical(["a", "b", "c", "a"], ordered=True) + exp_categories = Index(["c", "b", "a"]) + exp_values = np.array(["a", "b", "c", "a"], dtype=np.object_) + + cat = cat.set_categories(["c", "b", "a"]) + res = cat.set_categories(["a", "b", "c"]) + # cat must be the same as before + tm.assert_index_equal(cat.categories, exp_categories) + tm.assert_numpy_array_equal(cat.__array__(), exp_values) + # only res is changed + exp_categories_back = Index(["a", "b", "c"]) + tm.assert_index_equal(res.categories, exp_categories_back) + tm.assert_numpy_array_equal(res.__array__(), exp_values) + + # not all "old" included in "new" -> all not included ones are now + # np.nan + cat = Categorical(["a", "b", "c", "a"], ordered=True) + res = cat.set_categories(["a"]) + tm.assert_numpy_array_equal(res.codes, np.array([0, -1, -1, 0], dtype=np.int8)) + + # still not all "old" in "new" + res = cat.set_categories(["a", "b", "d"]) + tm.assert_numpy_array_equal(res.codes, np.array([0, 1, -1, 0], dtype=np.int8)) + tm.assert_index_equal(res.categories, Index(["a", "b", "d"])) + + # all "old" included in "new" + cat = cat.set_categories(["a", "b", "c", "d"]) + exp_categories = Index(["a", "b", "c", "d"]) + tm.assert_index_equal(cat.categories, exp_categories) + + # internals... + c = Categorical([1, 2, 3, 4, 1], categories=[1, 2, 3, 4], ordered=True) + tm.assert_numpy_array_equal(c._codes, np.array([0, 1, 2, 3, 0], dtype=np.int8)) + tm.assert_index_equal(c.categories, Index([1, 2, 3, 4])) + + exp = np.array([1, 2, 3, 4, 1], dtype=np.int64) + tm.assert_numpy_array_equal(np.asarray(c), exp) + + # all "pointers" to '4' must be changed from 3 to 0,... + c = c.set_categories([4, 3, 2, 1]) + + # positions are changed + tm.assert_numpy_array_equal(c._codes, np.array([3, 2, 1, 0, 3], dtype=np.int8)) + + # categories are now in new order + tm.assert_index_equal(c.categories, Index([4, 3, 2, 1])) + + # output is the same + exp = np.array([1, 2, 3, 4, 1], dtype=np.int64) + tm.assert_numpy_array_equal(np.asarray(c), exp) + assert c.min() == 4 + assert c.max() == 1 + + # set_categories should set the ordering if specified + c2 = c.set_categories([4, 3, 2, 1], ordered=False) + assert not c2.ordered + + tm.assert_numpy_array_equal(np.asarray(c), np.asarray(c2)) + + # set_categories should pass thru the ordering + c2 = c.set_ordered(False).set_categories([4, 3, 2, 1]) + assert not c2.ordered + + tm.assert_numpy_array_equal(np.asarray(c), np.asarray(c2)) + + @pytest.mark.parametrize( + "values, categories, new_categories", + [ + # No NaNs, same cats, same order + (["a", "b", "a"], ["a", "b"], ["a", "b"]), + # No NaNs, same cats, different order + (["a", "b", "a"], ["a", "b"], ["b", "a"]), + # Same, unsorted + (["b", "a", "a"], ["a", "b"], ["a", "b"]), + # No NaNs, same cats, different order + (["b", "a", "a"], ["a", "b"], ["b", "a"]), + # NaNs + (["a", "b", "c"], ["a", "b"], ["a", "b"]), + (["a", "b", "c"], ["a", "b"], ["b", "a"]), + (["b", "a", "c"], ["a", "b"], ["a", "b"]), + (["b", "a", "c"], ["a", "b"], ["a", "b"]), + # Introduce NaNs + (["a", "b", "c"], ["a", "b"], ["a"]), + (["a", "b", "c"], ["a", "b"], ["b"]), + (["b", "a", "c"], ["a", "b"], ["a"]), + (["b", "a", "c"], ["a", "b"], ["a"]), + # No overlap + (["a", "b", "c"], ["a", "b"], ["d", "e"]), + ], + ) + @pytest.mark.parametrize("ordered", [True, False]) + def test_set_categories_many(self, values, categories, new_categories, ordered): + c = Categorical(values, categories) + expected = Categorical(values, new_categories, ordered) + result = c.set_categories(new_categories, ordered=ordered) + tm.assert_categorical_equal(result, expected) + + def test_set_categories_rename_less(self): + # GH 24675 + cat = Categorical(["A", "B"]) + result = cat.set_categories(["A"], rename=True) + expected = Categorical(["A", np.nan]) + tm.assert_categorical_equal(result, expected) + + def test_set_categories_private(self): + cat = Categorical(["a", "b", "c"], categories=["a", "b", "c", "d"]) + cat._set_categories(["a", "c", "d", "e"]) + expected = Categorical(["a", "c", "d"], categories=list("acde")) + tm.assert_categorical_equal(cat, expected) + + # fastpath + cat = Categorical(["a", "b", "c"], categories=["a", "b", "c", "d"]) + cat._set_categories(["a", "c", "d", "e"], fastpath=True) + expected = Categorical(["a", "c", "d"], categories=list("acde")) + tm.assert_categorical_equal(cat, expected) + + def test_remove_categories(self): + cat = Categorical(["a", "b", "c", "a"], ordered=True) + old = cat.copy() + new = Categorical(["a", "b", np.nan, "a"], categories=["a", "b"], ordered=True) + + res = cat.remove_categories("c") + tm.assert_categorical_equal(cat, old) + tm.assert_categorical_equal(res, new) + + res = cat.remove_categories(["c"]) + tm.assert_categorical_equal(cat, old) + tm.assert_categorical_equal(res, new) + + @pytest.mark.parametrize("removals", [["c"], ["c", np.nan], "c", ["c", "c"]]) + def test_remove_categories_raises(self, removals): + cat = Categorical(["a", "b", "a"]) + message = re.escape("removals must all be in old categories: {'c'}") + + with pytest.raises(ValueError, match=message): + cat.remove_categories(removals) + + def test_remove_unused_categories(self): + c = Categorical(["a", "b", "c", "d", "a"], categories=["a", "b", "c", "d", "e"]) + exp_categories_all = Index(["a", "b", "c", "d", "e"]) + exp_categories_dropped = Index(["a", "b", "c", "d"]) + + tm.assert_index_equal(c.categories, exp_categories_all) + + res = c.remove_unused_categories() + tm.assert_index_equal(res.categories, exp_categories_dropped) + tm.assert_index_equal(c.categories, exp_categories_all) + + # with NaN values (GH11599) + c = Categorical(["a", "b", "c", np.nan], categories=["a", "b", "c", "d", "e"]) + res = c.remove_unused_categories() + tm.assert_index_equal(res.categories, Index(np.array(["a", "b", "c"]))) + exp_codes = np.array([0, 1, 2, -1], dtype=np.int8) + tm.assert_numpy_array_equal(res.codes, exp_codes) + tm.assert_index_equal(c.categories, exp_categories_all) + + val = ["F", np.nan, "D", "B", "D", "F", np.nan] + cat = Categorical(values=val, categories=list("ABCDEFG")) + out = cat.remove_unused_categories() + tm.assert_index_equal(out.categories, Index(["B", "D", "F"])) + exp_codes = np.array([2, -1, 1, 0, 1, 2, -1], dtype=np.int8) + tm.assert_numpy_array_equal(out.codes, exp_codes) + assert out.tolist() == val + + alpha = list("abcdefghijklmnopqrstuvwxyz") + val = np.random.default_rng(2).choice(alpha[::2], 10000).astype("object") + val[np.random.default_rng(2).choice(len(val), 100)] = np.nan + + cat = Categorical(values=val, categories=alpha) + out = cat.remove_unused_categories() + assert out.tolist() == val.tolist() + + +class TestCategoricalAPIWithFactor: + def test_describe(self): + factor = Categorical(["a", "b", "b", "a", "a", "c", "c", "c"], ordered=True) + # string type + desc = factor.describe() + assert factor.ordered + exp_index = CategoricalIndex( + ["a", "b", "c"], name="categories", ordered=factor.ordered + ) + expected = DataFrame( + {"counts": [3, 2, 3], "freqs": [3 / 8.0, 2 / 8.0, 3 / 8.0]}, index=exp_index + ) + tm.assert_frame_equal(desc, expected) + + # check unused categories + cat = factor.copy() + cat = cat.set_categories(["a", "b", "c", "d"]) + desc = cat.describe() + + exp_index = CategoricalIndex( + list("abcd"), ordered=factor.ordered, name="categories" + ) + expected = DataFrame( + {"counts": [3, 2, 3, 0], "freqs": [3 / 8.0, 2 / 8.0, 3 / 8.0, 0]}, + index=exp_index, + ) + tm.assert_frame_equal(desc, expected) + + # check an integer one + cat = Categorical([1, 2, 3, 1, 2, 3, 3, 2, 1, 1, 1]) + desc = cat.describe() + exp_index = CategoricalIndex([1, 2, 3], ordered=cat.ordered, name="categories") + expected = DataFrame( + {"counts": [5, 3, 3], "freqs": [5 / 11.0, 3 / 11.0, 3 / 11.0]}, + index=exp_index, + ) + tm.assert_frame_equal(desc, expected) + + # https://github.com/pandas-dev/pandas/issues/3678 + # describe should work with NaN + cat = Categorical([np.nan, 1, 2, 2]) + desc = cat.describe() + expected = DataFrame( + {"counts": [1, 2, 1], "freqs": [1 / 4.0, 2 / 4.0, 1 / 4.0]}, + index=CategoricalIndex( + [1, 2, np.nan], categories=[1, 2], name="categories" + ), + ) + tm.assert_frame_equal(desc, expected) + + +class TestPrivateCategoricalAPI: + def test_codes_immutable(self): + # Codes should be read only + c = Categorical(["a", "b", "c", "a", np.nan]) + exp = np.array([0, 1, 2, 0, -1], dtype="int8") + tm.assert_numpy_array_equal(c.codes, exp) + + # Assignments to codes should raise + msg = ( + "property 'codes' of 'Categorical' object has no setter" + if PY311 + else "can't set attribute" + ) + with pytest.raises(AttributeError, match=msg): + c.codes = np.array([0, 1, 2, 0, 1], dtype="int8") + + # changes in the codes array should raise + codes = c.codes + + with pytest.raises(ValueError, match="assignment destination is read-only"): + codes[4] = 1 + + # But even after getting the codes, the original array should still be + # writeable! + c[4] = "a" + exp = np.array([0, 1, 2, 0, 0], dtype="int8") + tm.assert_numpy_array_equal(c.codes, exp) + c._codes[4] = 2 + exp = np.array([0, 1, 2, 0, 2], dtype="int8") + tm.assert_numpy_array_equal(c.codes, exp) + + @pytest.mark.parametrize( + "codes, old, new, expected", + [ + ([0, 1], ["a", "b"], ["a", "b"], [0, 1]), + ([0, 1], ["b", "a"], ["b", "a"], [0, 1]), + ([0, 1], ["a", "b"], ["b", "a"], [1, 0]), + ([0, 1], ["b", "a"], ["a", "b"], [1, 0]), + ([0, 1, 0, 1], ["a", "b"], ["a", "b", "c"], [0, 1, 0, 1]), + ([0, 1, 2, 2], ["a", "b", "c"], ["a", "b"], [0, 1, -1, -1]), + ([0, 1, -1], ["a", "b", "c"], ["a", "b", "c"], [0, 1, -1]), + ([0, 1, -1], ["a", "b", "c"], ["b"], [-1, 0, -1]), + ([0, 1, -1], ["a", "b", "c"], ["d"], [-1, -1, -1]), + ([0, 1, -1], ["a", "b", "c"], [], [-1, -1, -1]), + ([-1, -1], [], ["a", "b"], [-1, -1]), + ([1, 0], ["b", "a"], ["a", "b"], [0, 1]), + ], + ) + def test_recode_to_categories(self, codes, old, new, expected): + codes = np.asanyarray(codes, dtype=np.int8) + expected = np.asanyarray(expected, dtype=np.int8) + old = Index(old) + new = Index(new) + result = recode_for_categories(codes, old, new) + tm.assert_numpy_array_equal(result, expected) + + def test_recode_to_categories_large(self): + N = 1000 + codes = np.arange(N) + old = Index(codes) + expected = np.arange(N - 1, -1, -1, dtype=np.int16) + new = Index(expected) + result = recode_for_categories(codes, old, new) + tm.assert_numpy_array_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_astype.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_astype.py new file mode 100644 index 0000000000000000000000000000000000000000..ee930ac84aaf246c6e79cb1c7eb7a7dfe179ff8c --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_astype.py @@ -0,0 +1,155 @@ +import numpy as np +import pytest + +from pandas import ( + Categorical, + CategoricalDtype, + CategoricalIndex, + DatetimeIndex, + Interval, + NaT, + Period, + Timestamp, + array, + to_datetime, +) +import pandas._testing as tm + + +class TestAstype: + @pytest.mark.parametrize("cls", [Categorical, CategoricalIndex]) + @pytest.mark.parametrize("values", [[1, np.nan], [Timestamp("2000"), NaT]]) + def test_astype_nan_to_int(self, cls, values): + # GH#28406 + obj = cls(values) + + msg = "Cannot (cast|convert)" + with pytest.raises((ValueError, TypeError), match=msg): + obj.astype(int) + + @pytest.mark.parametrize( + "expected", + [ + array(["2019", "2020"], dtype="datetime64[ns, UTC]"), + array([0, 0], dtype="timedelta64[ns]"), + array([Period("2019"), Period("2020")], dtype="period[Y-DEC]"), + array([Interval(0, 1), Interval(1, 2)], dtype="interval"), + array([1, np.nan], dtype="Int64"), + ], + ) + def test_astype_category_to_extension_dtype(self, expected): + # GH#28668 + result = expected.astype("category").astype(expected.dtype) + + tm.assert_extension_array_equal(result, expected) + + @pytest.mark.parametrize( + "dtype, expected", + [ + ( + "datetime64[ns]", + np.array(["2015-01-01T00:00:00.000000000"], dtype="datetime64[ns]"), + ), + ( + "datetime64[ns, MET]", + DatetimeIndex([Timestamp("2015-01-01 00:00:00+0100", tz="MET")]).array, + ), + ], + ) + def test_astype_to_datetime64(self, dtype, expected): + # GH#28448 + result = Categorical(["2015-01-01"]).astype(dtype) + assert result == expected + + def test_astype_str_int_categories_to_nullable_int(self): + # GH#39616 + dtype = CategoricalDtype([str(i) for i in range(5)]) + codes = np.random.default_rng(2).integers(5, size=20) + arr = Categorical.from_codes(codes, dtype=dtype) + + res = arr.astype("Int64") + expected = array(codes, dtype="Int64") + tm.assert_extension_array_equal(res, expected) + + def test_astype_str_int_categories_to_nullable_float(self): + # GH#39616 + dtype = CategoricalDtype([str(i / 2) for i in range(5)]) + codes = np.random.default_rng(2).integers(5, size=20) + arr = Categorical.from_codes(codes, dtype=dtype) + + res = arr.astype("Float64") + expected = array(codes, dtype="Float64") / 2 + tm.assert_extension_array_equal(res, expected) + + @pytest.mark.parametrize("ordered", [True, False]) + def test_astype(self, ordered): + # string + cat = Categorical(list("abbaaccc"), ordered=ordered) + result = cat.astype(object) + expected = np.array(cat) + tm.assert_numpy_array_equal(result, expected) + + msg = r"Cannot cast object|str dtype to float64" + with pytest.raises(ValueError, match=msg): + cat.astype(float) + + # numeric + cat = Categorical([0, 1, 2, 2, 1, 0, 1, 0, 2], ordered=ordered) + result = cat.astype(object) + expected = np.array(cat, dtype=object) + tm.assert_numpy_array_equal(result, expected) + + result = cat.astype(int) + expected = np.array(cat, dtype="int") + tm.assert_numpy_array_equal(result, expected) + + result = cat.astype(float) + expected = np.array(cat, dtype=float) + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize("dtype_ordered", [True, False]) + @pytest.mark.parametrize("cat_ordered", [True, False]) + def test_astype_category(self, dtype_ordered, cat_ordered): + # GH#10696/GH#18593 + data = list("abcaacbab") + cat = Categorical(data, categories=list("bac"), ordered=cat_ordered) + + # standard categories + dtype = CategoricalDtype(ordered=dtype_ordered) + result = cat.astype(dtype) + expected = Categorical(data, categories=cat.categories, ordered=dtype_ordered) + tm.assert_categorical_equal(result, expected) + + # non-standard categories + dtype = CategoricalDtype(list("adc"), dtype_ordered) + result = cat.astype(dtype) + expected = Categorical(data, dtype=dtype) + tm.assert_categorical_equal(result, expected) + + if dtype_ordered is False: + # dtype='category' can't specify ordered, so only test once + result = cat.astype("category") + expected = cat + tm.assert_categorical_equal(result, expected) + + def test_astype_object_datetime_categories(self): + # GH#40754 + cat = Categorical(to_datetime(["2021-03-27", NaT])) + result = cat.astype(object) + expected = np.array([Timestamp("2021-03-27 00:00:00"), NaT], dtype="object") + tm.assert_numpy_array_equal(result, expected) + + def test_astype_object_timestamp_categories(self): + # GH#18024 + cat = Categorical([Timestamp("2014-01-01")]) + result = cat.astype(object) + expected = np.array([Timestamp("2014-01-01 00:00:00")], dtype="object") + tm.assert_numpy_array_equal(result, expected) + + def test_astype_category_readonly_mask_values(self): + # GH#53658 + arr = array([0, 1, 2], dtype="Int64") + arr._mask.flags["WRITEABLE"] = False + result = arr.astype("category") + expected = array([0, 1, 2], dtype="Int64").astype("category") + tm.assert_extension_array_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_constructors.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_constructors.py new file mode 100644 index 0000000000000000000000000000000000000000..8ac479cf8a0a4a7fb0c11f94f04bad496f7a6343 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_constructors.py @@ -0,0 +1,787 @@ +from datetime import ( + date, + datetime, +) + +import numpy as np +import pytest + +from pandas._config import using_string_dtype + +from pandas.compat import HAS_PYARROW + +from pandas.core.dtypes.common import ( + is_float_dtype, + is_integer_dtype, +) +from pandas.core.dtypes.dtypes import CategoricalDtype + +import pandas as pd +from pandas import ( + Categorical, + CategoricalIndex, + DatetimeIndex, + Index, + Interval, + IntervalIndex, + MultiIndex, + NaT, + Series, + Timestamp, + date_range, + period_range, + timedelta_range, +) +import pandas._testing as tm + + +class TestCategoricalConstructors: + def test_fastpath_deprecated(self): + codes = np.array([1, 2, 3]) + dtype = CategoricalDtype(categories=["a", "b", "c", "d"], ordered=False) + msg = "The 'fastpath' keyword in Categorical is deprecated" + with tm.assert_produces_warning(DeprecationWarning, match=msg): + Categorical(codes, dtype=dtype, fastpath=True) + + def test_categorical_from_cat_and_dtype_str_preserve_ordered(self): + # GH#49309 we should preserve orderedness in `res` + cat = Categorical([3, 1], categories=[3, 2, 1], ordered=True) + + res = Categorical(cat, dtype="category") + assert res.dtype.ordered + + def test_categorical_disallows_scalar(self): + # GH#38433 + with pytest.raises(TypeError, match="Categorical input must be list-like"): + Categorical("A", categories=["A", "B"]) + + def test_categorical_1d_only(self): + # ndim > 1 + msg = "> 1 ndim Categorical are not supported at this time" + with pytest.raises(NotImplementedError, match=msg): + Categorical(np.array([list("abcd")])) + + def test_validate_ordered(self): + # see gh-14058 + exp_msg = "'ordered' must either be 'True' or 'False'" + exp_err = TypeError + + # This should be a boolean. + ordered = np.array([0, 1, 2]) + + with pytest.raises(exp_err, match=exp_msg): + Categorical([1, 2, 3], ordered=ordered) + + with pytest.raises(exp_err, match=exp_msg): + Categorical.from_codes( + [0, 0, 1], categories=["a", "b", "c"], ordered=ordered + ) + + def test_constructor_empty(self): + # GH 17248 + c = Categorical([]) + expected = Index([]) + tm.assert_index_equal(c.categories, expected) + + c = Categorical([], categories=[1, 2, 3]) + expected = Index([1, 2, 3], dtype=np.int64) + tm.assert_index_equal(c.categories, expected) + + def test_constructor_empty_boolean(self): + # see gh-22702 + cat = Categorical([], categories=[True, False]) + categories = sorted(cat.categories.tolist()) + assert categories == [False, True] + + def test_constructor_tuples(self): + values = np.array([(1,), (1, 2), (1,), (1, 2)], dtype=object) + result = Categorical(values) + expected = Index([(1,), (1, 2)], tupleize_cols=False) + tm.assert_index_equal(result.categories, expected) + assert result.ordered is False + + def test_constructor_tuples_datetimes(self): + # numpy will auto reshape when all of the tuples are the + # same len, so add an extra one with 2 items and slice it off + values = np.array( + [ + (Timestamp("2010-01-01"),), + (Timestamp("2010-01-02"),), + (Timestamp("2010-01-01"),), + (Timestamp("2010-01-02"),), + ("a", "b"), + ], + dtype=object, + )[:-1] + result = Categorical(values) + expected = Index( + [(Timestamp("2010-01-01"),), (Timestamp("2010-01-02"),)], + tupleize_cols=False, + ) + tm.assert_index_equal(result.categories, expected) + + def test_constructor_unsortable(self): + # it works! + arr = np.array([1, 2, 3, datetime.now()], dtype="O") + factor = Categorical(arr, ordered=False) + assert not factor.ordered + + # this however will raise as cannot be sorted + msg = ( + "'values' is not ordered, please explicitly specify the " + "categories order by passing in a categories argument." + ) + with pytest.raises(TypeError, match=msg): + Categorical(arr, ordered=True) + + def test_constructor_interval(self): + result = Categorical( + [Interval(1, 2), Interval(2, 3), Interval(3, 6)], ordered=True + ) + ii = IntervalIndex([Interval(1, 2), Interval(2, 3), Interval(3, 6)]) + exp = Categorical(ii, ordered=True) + tm.assert_categorical_equal(result, exp) + tm.assert_index_equal(result.categories, ii) + + def test_constructor(self): + exp_arr = np.array(["a", "b", "c", "a", "b", "c"], dtype=np.object_) + c1 = Categorical(exp_arr) + tm.assert_numpy_array_equal(c1.__array__(), exp_arr) + c2 = Categorical(exp_arr, categories=["a", "b", "c"]) + tm.assert_numpy_array_equal(c2.__array__(), exp_arr) + c2 = Categorical(exp_arr, categories=["c", "b", "a"]) + tm.assert_numpy_array_equal(c2.__array__(), exp_arr) + + # categories must be unique + msg = "Categorical categories must be unique" + with pytest.raises(ValueError, match=msg): + Categorical([1, 2], [1, 2, 2]) + + with pytest.raises(ValueError, match=msg): + Categorical(["a", "b"], ["a", "b", "b"]) + + # The default should be unordered + c1 = Categorical(["a", "b", "c", "a"]) + assert not c1.ordered + + # Categorical as input + c1 = Categorical(["a", "b", "c", "a"]) + c2 = Categorical(c1) + tm.assert_categorical_equal(c1, c2) + + c1 = Categorical(["a", "b", "c", "a"], categories=["a", "b", "c", "d"]) + c2 = Categorical(c1) + tm.assert_categorical_equal(c1, c2) + + c1 = Categorical(["a", "b", "c", "a"], categories=["a", "c", "b"]) + c2 = Categorical(c1) + tm.assert_categorical_equal(c1, c2) + + c1 = Categorical(["a", "b", "c", "a"], categories=["a", "c", "b"]) + c2 = Categorical(c1, categories=["a", "b", "c"]) + tm.assert_numpy_array_equal(c1.__array__(), c2.__array__()) + tm.assert_index_equal(c2.categories, Index(["a", "b", "c"])) + + # Series of dtype category + c1 = Categorical(["a", "b", "c", "a"], categories=["a", "b", "c", "d"]) + c2 = Categorical(Series(c1)) + tm.assert_categorical_equal(c1, c2) + + c1 = Categorical(["a", "b", "c", "a"], categories=["a", "c", "b"]) + c2 = Categorical(Series(c1)) + tm.assert_categorical_equal(c1, c2) + + # Series + c1 = Categorical(["a", "b", "c", "a"]) + c2 = Categorical(Series(["a", "b", "c", "a"])) + tm.assert_categorical_equal(c1, c2) + + c1 = Categorical(["a", "b", "c", "a"], categories=["a", "b", "c", "d"]) + c2 = Categorical(Series(["a", "b", "c", "a"]), categories=["a", "b", "c", "d"]) + tm.assert_categorical_equal(c1, c2) + + # This should result in integer categories, not float! + cat = Categorical([1, 2, 3, np.nan], categories=[1, 2, 3]) + assert is_integer_dtype(cat.categories) + + # https://github.com/pandas-dev/pandas/issues/3678 + cat = Categorical([np.nan, 1, 2, 3]) + assert is_integer_dtype(cat.categories) + + # this should result in floats + cat = Categorical([np.nan, 1, 2.0, 3]) + assert is_float_dtype(cat.categories) + + cat = Categorical([np.nan, 1.0, 2.0, 3.0]) + assert is_float_dtype(cat.categories) + + # This doesn't work -> this would probably need some kind of "remember + # the original type" feature to try to cast the array interface result + # to... + + # vals = np.asarray(cat[cat.notna()]) + # assert is_integer_dtype(vals) + + # corner cases + cat = Categorical([1]) + assert len(cat.categories) == 1 + assert cat.categories[0] == 1 + assert len(cat.codes) == 1 + assert cat.codes[0] == 0 + + cat = Categorical(["a"]) + assert len(cat.categories) == 1 + assert cat.categories[0] == "a" + assert len(cat.codes) == 1 + assert cat.codes[0] == 0 + + # two arrays + # - when the first is an integer dtype and the second is not + # - when the resulting codes are all -1/NaN + with tm.assert_produces_warning(None): + Categorical([0, 1, 2, 0, 1, 2], categories=["a", "b", "c"]) + + with tm.assert_produces_warning(None): + Categorical([0, 1, 2, 0, 1, 2], categories=[3, 4, 5]) + + # the next one are from the old docs + with tm.assert_produces_warning(None): + Categorical([0, 1, 2, 0, 1, 2], [1, 2, 3]) + cat = Categorical([1, 2], categories=[1, 2, 3]) + + # this is a legitimate constructor + with tm.assert_produces_warning(None): + Categorical(np.array([], dtype="int64"), categories=[3, 2, 1], ordered=True) + + def test_constructor_with_existing_categories(self): + # GH25318: constructing with pd.Series used to bogusly skip recoding + # categories + c0 = Categorical(["a", "b", "c", "a"]) + c1 = Categorical(["a", "b", "c", "a"], categories=["b", "c"]) + + c2 = Categorical(c0, categories=c1.categories) + tm.assert_categorical_equal(c1, c2) + + c3 = Categorical(Series(c0), categories=c1.categories) + tm.assert_categorical_equal(c1, c3) + + def test_constructor_not_sequence(self): + # https://github.com/pandas-dev/pandas/issues/16022 + msg = r"^Parameter 'categories' must be list-like, was" + with pytest.raises(TypeError, match=msg): + Categorical(["a", "b"], categories="a") + + def test_constructor_with_null(self): + # Cannot have NaN in categories + msg = "Categorical categories cannot be null" + with pytest.raises(ValueError, match=msg): + Categorical([np.nan, "a", "b", "c"], categories=[np.nan, "a", "b", "c"]) + + with pytest.raises(ValueError, match=msg): + Categorical([None, "a", "b", "c"], categories=[None, "a", "b", "c"]) + + with pytest.raises(ValueError, match=msg): + Categorical( + DatetimeIndex(["nat", "20160101"]), + categories=[NaT, Timestamp("20160101")], + ) + + def test_constructor_with_index(self): + ci = CategoricalIndex(list("aabbca"), categories=list("cab")) + tm.assert_categorical_equal(ci.values, Categorical(ci)) + + ci = CategoricalIndex(list("aabbca"), categories=list("cab")) + tm.assert_categorical_equal( + ci.values, Categorical(ci.astype(object), categories=ci.categories) + ) + + def test_constructor_with_generator(self): + # This was raising an Error in isna(single_val).any() because isna + # returned a scalar for a generator + + exp = Categorical([0, 1, 2]) + cat = Categorical(x for x in [0, 1, 2]) + tm.assert_categorical_equal(cat, exp) + cat = Categorical(range(3)) + tm.assert_categorical_equal(cat, exp) + + MultiIndex.from_product([range(5), ["a", "b", "c"]]) + + # check that categories accept generators and sequences + cat = Categorical([0, 1, 2], categories=(x for x in [0, 1, 2])) + tm.assert_categorical_equal(cat, exp) + cat = Categorical([0, 1, 2], categories=range(3)) + tm.assert_categorical_equal(cat, exp) + + def test_constructor_with_rangeindex(self): + # RangeIndex is preserved in Categories + rng = Index(range(3)) + + cat = Categorical(rng) + tm.assert_index_equal(cat.categories, rng, exact=True) + + cat = Categorical([1, 2, 0], categories=rng) + tm.assert_index_equal(cat.categories, rng, exact=True) + + @pytest.mark.parametrize( + "dtl", + [ + date_range("1995-01-01 00:00:00", periods=5, freq="s"), + date_range("1995-01-01 00:00:00", periods=5, freq="s", tz="US/Eastern"), + timedelta_range("1 day", periods=5, freq="s"), + ], + ) + def test_constructor_with_datetimelike(self, dtl): + # see gh-12077 + # constructor with a datetimelike and NaT + + s = Series(dtl) + c = Categorical(s) + + expected = type(dtl)(s) + expected._data.freq = None + + tm.assert_index_equal(c.categories, expected) + tm.assert_numpy_array_equal(c.codes, np.arange(5, dtype="int8")) + + # with NaT + s2 = s.copy() + s2.iloc[-1] = NaT + c = Categorical(s2) + + expected = type(dtl)(s2.dropna()) + expected._data.freq = None + + tm.assert_index_equal(c.categories, expected) + + exp = np.array([0, 1, 2, 3, -1], dtype=np.int8) + tm.assert_numpy_array_equal(c.codes, exp) + + result = repr(c) + assert "NaT" in result + + def test_constructor_from_index_series_datetimetz(self): + idx = date_range("2015-01-01 10:00", freq="D", periods=3, tz="US/Eastern") + idx = idx._with_freq(None) # freq not preserved in result.categories + result = Categorical(idx) + tm.assert_index_equal(result.categories, idx) + + result = Categorical(Series(idx)) + tm.assert_index_equal(result.categories, idx) + + def test_constructor_date_objects(self): + # we dont cast date objects to timestamps, matching Index constructor + v = date.today() + + cat = Categorical([v, v]) + assert cat.categories.dtype == object + assert type(cat.categories[0]) is date + + def test_constructor_from_index_series_timedelta(self): + idx = timedelta_range("1 days", freq="D", periods=3) + idx = idx._with_freq(None) # freq not preserved in result.categories + result = Categorical(idx) + tm.assert_index_equal(result.categories, idx) + + result = Categorical(Series(idx)) + tm.assert_index_equal(result.categories, idx) + + def test_constructor_from_index_series_period(self): + idx = period_range("2015-01-01", freq="D", periods=3) + result = Categorical(idx) + tm.assert_index_equal(result.categories, idx) + + result = Categorical(Series(idx)) + tm.assert_index_equal(result.categories, idx) + + @pytest.mark.parametrize( + "values", + [ + np.array([1.0, 1.2, 1.8, np.nan]), + np.array([1, 2, 3], dtype="int64"), + ["a", "b", "c", np.nan], + [pd.Period("2014-01"), pd.Period("2014-02"), NaT], + [Timestamp("2014-01-01"), Timestamp("2014-01-02"), NaT], + [ + Timestamp("2014-01-01", tz="US/Eastern"), + Timestamp("2014-01-02", tz="US/Eastern"), + NaT, + ], + ], + ) + def test_constructor_invariant(self, values): + # GH 14190 + c = Categorical(values) + c2 = Categorical(c) + tm.assert_categorical_equal(c, c2) + + @pytest.mark.parametrize("ordered", [True, False]) + def test_constructor_with_dtype(self, ordered): + categories = ["b", "a", "c"] + dtype = CategoricalDtype(categories, ordered=ordered) + result = Categorical(["a", "b", "a", "c"], dtype=dtype) + expected = Categorical( + ["a", "b", "a", "c"], categories=categories, ordered=ordered + ) + tm.assert_categorical_equal(result, expected) + assert result.ordered is ordered + + def test_constructor_dtype_and_others_raises(self): + dtype = CategoricalDtype(["a", "b"], ordered=True) + msg = "Cannot specify `categories` or `ordered` together with `dtype`." + with pytest.raises(ValueError, match=msg): + Categorical(["a", "b"], categories=["a", "b"], dtype=dtype) + + with pytest.raises(ValueError, match=msg): + Categorical(["a", "b"], ordered=True, dtype=dtype) + + with pytest.raises(ValueError, match=msg): + Categorical(["a", "b"], ordered=False, dtype=dtype) + + @pytest.mark.parametrize("categories", [None, ["a", "b"], ["a", "c"]]) + @pytest.mark.parametrize("ordered", [True, False]) + def test_constructor_str_category(self, categories, ordered): + result = Categorical( + ["a", "b"], categories=categories, ordered=ordered, dtype="category" + ) + expected = Categorical(["a", "b"], categories=categories, ordered=ordered) + tm.assert_categorical_equal(result, expected) + + def test_constructor_str_unknown(self): + with pytest.raises(ValueError, match="Unknown dtype"): + Categorical([1, 2], dtype="foo") + + @pytest.mark.xfail( + using_string_dtype() and HAS_PYARROW, reason="Can't be NumPy strings" + ) + def test_constructor_np_strs(self): + # GH#31499 Hashtable.map_locations needs to work on np.str_ objects + cat = Categorical(["1", "0", "1"], [np.str_("0"), np.str_("1")]) + assert all(isinstance(x, np.str_) for x in cat.categories) + + def test_constructor_from_categorical_with_dtype(self): + dtype = CategoricalDtype(["a", "b", "c"], ordered=True) + values = Categorical(["a", "b", "d"]) + result = Categorical(values, dtype=dtype) + # We use dtype.categories, not values.categories + expected = Categorical( + ["a", "b", "d"], categories=["a", "b", "c"], ordered=True + ) + tm.assert_categorical_equal(result, expected) + + def test_constructor_from_categorical_with_unknown_dtype(self): + dtype = CategoricalDtype(None, ordered=True) + values = Categorical(["a", "b", "d"]) + result = Categorical(values, dtype=dtype) + # We use values.categories, not dtype.categories + expected = Categorical( + ["a", "b", "d"], categories=["a", "b", "d"], ordered=True + ) + tm.assert_categorical_equal(result, expected) + + def test_constructor_from_categorical_string(self): + values = Categorical(["a", "b", "d"]) + # use categories, ordered + result = Categorical( + values, categories=["a", "b", "c"], ordered=True, dtype="category" + ) + expected = Categorical( + ["a", "b", "d"], categories=["a", "b", "c"], ordered=True + ) + tm.assert_categorical_equal(result, expected) + + # No string + result = Categorical(values, categories=["a", "b", "c"], ordered=True) + tm.assert_categorical_equal(result, expected) + + def test_constructor_with_categorical_categories(self): + # GH17884 + expected = Categorical(["a", "b"], categories=["a", "b", "c"]) + + result = Categorical(["a", "b"], categories=Categorical(["a", "b", "c"])) + tm.assert_categorical_equal(result, expected) + + result = Categorical(["a", "b"], categories=CategoricalIndex(["a", "b", "c"])) + tm.assert_categorical_equal(result, expected) + + @pytest.mark.parametrize("klass", [lambda x: np.array(x, dtype=object), list]) + def test_construction_with_null(self, klass, nulls_fixture): + # https://github.com/pandas-dev/pandas/issues/31927 + values = klass(["a", nulls_fixture, "b"]) + result = Categorical(values) + + dtype = CategoricalDtype(["a", "b"]) + codes = [0, -1, 1] + expected = Categorical.from_codes(codes=codes, dtype=dtype) + + tm.assert_categorical_equal(result, expected) + + @pytest.mark.parametrize("validate", [True, False]) + def test_from_codes_nullable_int_categories(self, any_numeric_ea_dtype, validate): + # GH#39649 + cats = pd.array(range(5), dtype=any_numeric_ea_dtype) + codes = np.random.default_rng(2).integers(5, size=3) + dtype = CategoricalDtype(cats) + arr = Categorical.from_codes(codes, dtype=dtype, validate=validate) + assert arr.categories.dtype == cats.dtype + tm.assert_index_equal(arr.categories, Index(cats)) + + def test_from_codes_empty(self): + cat = ["a", "b", "c"] + result = Categorical.from_codes([], categories=cat) + expected = Categorical([], categories=cat) + + tm.assert_categorical_equal(result, expected) + + @pytest.mark.parametrize("validate", [True, False]) + def test_from_codes_validate(self, validate): + # GH53122 + dtype = CategoricalDtype(["a", "b"]) + if validate: + with pytest.raises(ValueError, match="codes need to be between "): + Categorical.from_codes([4, 5], dtype=dtype, validate=validate) + else: + # passes, though has incorrect codes, but that's the user responsibility + Categorical.from_codes([4, 5], dtype=dtype, validate=validate) + + def test_from_codes_too_few_categories(self): + dtype = CategoricalDtype(categories=[1, 2]) + msg = "codes need to be between " + with pytest.raises(ValueError, match=msg): + Categorical.from_codes([1, 2], categories=dtype.categories) + with pytest.raises(ValueError, match=msg): + Categorical.from_codes([1, 2], dtype=dtype) + + def test_from_codes_non_int_codes(self): + dtype = CategoricalDtype(categories=[1, 2]) + msg = "codes need to be array-like integers" + with pytest.raises(ValueError, match=msg): + Categorical.from_codes(["a"], categories=dtype.categories) + with pytest.raises(ValueError, match=msg): + Categorical.from_codes(["a"], dtype=dtype) + + def test_from_codes_non_unique_categories(self): + with pytest.raises(ValueError, match="Categorical categories must be unique"): + Categorical.from_codes([0, 1, 2], categories=["a", "a", "b"]) + + def test_from_codes_nan_cat_included(self): + with pytest.raises(ValueError, match="Categorical categories cannot be null"): + Categorical.from_codes([0, 1, 2], categories=["a", "b", np.nan]) + + def test_from_codes_too_negative(self): + dtype = CategoricalDtype(categories=["a", "b", "c"]) + msg = r"codes need to be between -1 and len\(categories\)-1" + with pytest.raises(ValueError, match=msg): + Categorical.from_codes([-2, 1, 2], categories=dtype.categories) + with pytest.raises(ValueError, match=msg): + Categorical.from_codes([-2, 1, 2], dtype=dtype) + + def test_from_codes(self): + dtype = CategoricalDtype(categories=["a", "b", "c"]) + exp = Categorical(["a", "b", "c"], ordered=False) + res = Categorical.from_codes([0, 1, 2], categories=dtype.categories) + tm.assert_categorical_equal(exp, res) + + res = Categorical.from_codes([0, 1, 2], dtype=dtype) + tm.assert_categorical_equal(exp, res) + + @pytest.mark.parametrize("klass", [Categorical, CategoricalIndex]) + def test_from_codes_with_categorical_categories(self, klass): + # GH17884 + expected = Categorical(["a", "b"], categories=["a", "b", "c"]) + + result = Categorical.from_codes([0, 1], categories=klass(["a", "b", "c"])) + tm.assert_categorical_equal(result, expected) + + @pytest.mark.parametrize("klass", [Categorical, CategoricalIndex]) + def test_from_codes_with_non_unique_categorical_categories(self, klass): + with pytest.raises(ValueError, match="Categorical categories must be unique"): + Categorical.from_codes([0, 1], klass(["a", "b", "a"])) + + def test_from_codes_with_nan_code(self): + # GH21767 + codes = [1, 2, np.nan] + dtype = CategoricalDtype(categories=["a", "b", "c"]) + with pytest.raises(ValueError, match="codes need to be array-like integers"): + Categorical.from_codes(codes, categories=dtype.categories) + with pytest.raises(ValueError, match="codes need to be array-like integers"): + Categorical.from_codes(codes, dtype=dtype) + + @pytest.mark.parametrize("codes", [[1.0, 2.0, 0], [1.1, 2.0, 0]]) + def test_from_codes_with_float(self, codes): + # GH21767 + # float codes should raise even if values are equal to integers + dtype = CategoricalDtype(categories=["a", "b", "c"]) + + msg = "codes need to be array-like integers" + with pytest.raises(ValueError, match=msg): + Categorical.from_codes(codes, dtype.categories) + with pytest.raises(ValueError, match=msg): + Categorical.from_codes(codes, dtype=dtype) + + def test_from_codes_with_dtype_raises(self): + msg = "Cannot specify" + with pytest.raises(ValueError, match=msg): + Categorical.from_codes( + [0, 1], categories=["a", "b"], dtype=CategoricalDtype(["a", "b"]) + ) + + with pytest.raises(ValueError, match=msg): + Categorical.from_codes( + [0, 1], ordered=True, dtype=CategoricalDtype(["a", "b"]) + ) + + def test_from_codes_neither(self): + msg = "Both were None" + with pytest.raises(ValueError, match=msg): + Categorical.from_codes([0, 1]) + + def test_from_codes_with_nullable_int(self): + codes = pd.array([0, 1], dtype="Int64") + categories = ["a", "b"] + + result = Categorical.from_codes(codes, categories=categories) + expected = Categorical.from_codes(codes.to_numpy(int), categories=categories) + + tm.assert_categorical_equal(result, expected) + + def test_from_codes_with_nullable_int_na_raises(self): + codes = pd.array([0, None], dtype="Int64") + categories = ["a", "b"] + + msg = "codes cannot contain NA values" + with pytest.raises(ValueError, match=msg): + Categorical.from_codes(codes, categories=categories) + + @pytest.mark.parametrize("dtype", [None, "category"]) + def test_from_inferred_categories(self, dtype): + cats = ["a", "b"] + codes = np.array([0, 0, 1, 1], dtype="i8") + result = Categorical._from_inferred_categories(cats, codes, dtype) + expected = Categorical.from_codes(codes, cats) + tm.assert_categorical_equal(result, expected) + + @pytest.mark.parametrize("dtype", [None, "category"]) + def test_from_inferred_categories_sorts(self, dtype): + cats = ["b", "a"] + codes = np.array([0, 1, 1, 1], dtype="i8") + result = Categorical._from_inferred_categories(cats, codes, dtype) + expected = Categorical.from_codes([1, 0, 0, 0], ["a", "b"]) + tm.assert_categorical_equal(result, expected) + + def test_from_inferred_categories_dtype(self): + cats = ["a", "b", "d"] + codes = np.array([0, 1, 0, 2], dtype="i8") + dtype = CategoricalDtype(["c", "b", "a"], ordered=True) + result = Categorical._from_inferred_categories(cats, codes, dtype) + expected = Categorical( + ["a", "b", "a", "d"], categories=["c", "b", "a"], ordered=True + ) + tm.assert_categorical_equal(result, expected) + + def test_from_inferred_categories_coerces(self): + cats = ["1", "2", "bad"] + codes = np.array([0, 0, 1, 2], dtype="i8") + dtype = CategoricalDtype([1, 2]) + result = Categorical._from_inferred_categories(cats, codes, dtype) + expected = Categorical([1, 1, 2, np.nan]) + tm.assert_categorical_equal(result, expected) + + @pytest.mark.parametrize("ordered", [None, True, False]) + def test_construction_with_ordered(self, ordered): + # GH 9347, 9190 + cat = Categorical([0, 1, 2], ordered=ordered) + assert cat.ordered == bool(ordered) + + def test_constructor_imaginary(self): + values = [1, 2, 3 + 1j] + c1 = Categorical(values) + tm.assert_index_equal(c1.categories, Index(values)) + tm.assert_numpy_array_equal(np.array(c1), np.array(values)) + + def test_constructor_string_and_tuples(self): + # GH 21416 + c = Categorical(np.array(["c", ("a", "b"), ("b", "a"), "c"], dtype=object)) + expected_index = Index([("a", "b"), ("b", "a"), "c"]) + assert c.categories.equals(expected_index) + + def test_interval(self): + idx = pd.interval_range(0, 10, periods=10) + cat = Categorical(idx, categories=idx) + expected_codes = np.arange(10, dtype="int8") + tm.assert_numpy_array_equal(cat.codes, expected_codes) + tm.assert_index_equal(cat.categories, idx) + + # infer categories + cat = Categorical(idx) + tm.assert_numpy_array_equal(cat.codes, expected_codes) + tm.assert_index_equal(cat.categories, idx) + + # list values + cat = Categorical(list(idx)) + tm.assert_numpy_array_equal(cat.codes, expected_codes) + tm.assert_index_equal(cat.categories, idx) + + # list values, categories + cat = Categorical(list(idx), categories=list(idx)) + tm.assert_numpy_array_equal(cat.codes, expected_codes) + tm.assert_index_equal(cat.categories, idx) + + # shuffled + values = idx.take([1, 2, 0]) + cat = Categorical(values, categories=idx) + tm.assert_numpy_array_equal(cat.codes, np.array([1, 2, 0], dtype="int8")) + tm.assert_index_equal(cat.categories, idx) + + # extra + values = pd.interval_range(8, 11, periods=3) + cat = Categorical(values, categories=idx) + expected_codes = np.array([8, 9, -1], dtype="int8") + tm.assert_numpy_array_equal(cat.codes, expected_codes) + tm.assert_index_equal(cat.categories, idx) + + # overlapping + idx = IntervalIndex([Interval(0, 2), Interval(0, 1)]) + cat = Categorical(idx, categories=idx) + expected_codes = np.array([0, 1], dtype="int8") + tm.assert_numpy_array_equal(cat.codes, expected_codes) + tm.assert_index_equal(cat.categories, idx) + + def test_categorical_extension_array_nullable(self, nulls_fixture): + # GH: + arr = pd.arrays.StringArray._from_sequence( + [nulls_fixture] * 2, dtype=pd.StringDtype() + ) + result = Categorical(arr) + assert arr.dtype == result.categories.dtype + expected = Categorical(Series([pd.NA, pd.NA], dtype=arr.dtype)) + tm.assert_categorical_equal(result, expected) + + def test_from_sequence_copy(self): + cat = Categorical(np.arange(5).repeat(2)) + result = Categorical._from_sequence(cat, dtype=cat.dtype, copy=False) + + # more generally, we'd be OK with a view + assert result._codes is cat._codes + + result = Categorical._from_sequence(cat, dtype=cat.dtype, copy=True) + + assert not tm.shares_memory(result, cat) + + def test_constructor_datetime64_non_nano(self): + categories = np.arange(10).view("M8[D]") + values = categories[::2].copy() + + cat = Categorical(values, categories=categories) + assert (cat == values).all() + + def test_constructor_preserves_freq(self): + # GH33830 freq retention in categorical + dti = date_range("2016-01-01", periods=5) + + expected = dti.freq + + cat = Categorical(dti) + result = cat.categories.freq + + assert expected == result diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_dtypes.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_dtypes.py new file mode 100644 index 0000000000000000000000000000000000000000..525663cad1745880bc5e683e7302afdc2c06a527 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_dtypes.py @@ -0,0 +1,139 @@ +import numpy as np +import pytest + +from pandas.core.dtypes.dtypes import CategoricalDtype + +from pandas import ( + Categorical, + CategoricalIndex, + Index, + IntervalIndex, + Series, + Timestamp, +) +import pandas._testing as tm + + +class TestCategoricalDtypes: + def test_categories_match_up_to_permutation(self): + # test dtype comparisons between cats + + c1 = Categorical(list("aabca"), categories=list("abc"), ordered=False) + c2 = Categorical(list("aabca"), categories=list("cab"), ordered=False) + c3 = Categorical(list("aabca"), categories=list("cab"), ordered=True) + assert c1._categories_match_up_to_permutation(c1) + assert c2._categories_match_up_to_permutation(c2) + assert c3._categories_match_up_to_permutation(c3) + assert c1._categories_match_up_to_permutation(c2) + assert not c1._categories_match_up_to_permutation(c3) + assert not c1._categories_match_up_to_permutation(Index(list("aabca"))) + assert not c1._categories_match_up_to_permutation(c1.astype(object)) + assert c1._categories_match_up_to_permutation(CategoricalIndex(c1)) + assert c1._categories_match_up_to_permutation( + CategoricalIndex(c1, categories=list("cab")) + ) + assert not c1._categories_match_up_to_permutation( + CategoricalIndex(c1, ordered=True) + ) + + # GH 16659 + s1 = Series(c1) + s2 = Series(c2) + s3 = Series(c3) + assert c1._categories_match_up_to_permutation(s1) + assert c2._categories_match_up_to_permutation(s2) + assert c3._categories_match_up_to_permutation(s3) + assert c1._categories_match_up_to_permutation(s2) + assert not c1._categories_match_up_to_permutation(s3) + assert not c1._categories_match_up_to_permutation(s1.astype(object)) + + def test_set_dtype_same(self): + c = Categorical(["a", "b", "c"]) + result = c._set_dtype(CategoricalDtype(["a", "b", "c"])) + tm.assert_categorical_equal(result, c) + + def test_set_dtype_new_categories(self): + c = Categorical(["a", "b", "c"]) + result = c._set_dtype(CategoricalDtype(list("abcd"))) + tm.assert_numpy_array_equal(result.codes, c.codes) + tm.assert_index_equal(result.dtype.categories, Index(list("abcd"))) + + @pytest.mark.parametrize( + "values, categories, new_categories", + [ + # No NaNs, same cats, same order + (["a", "b", "a"], ["a", "b"], ["a", "b"]), + # No NaNs, same cats, different order + (["a", "b", "a"], ["a", "b"], ["b", "a"]), + # Same, unsorted + (["b", "a", "a"], ["a", "b"], ["a", "b"]), + # No NaNs, same cats, different order + (["b", "a", "a"], ["a", "b"], ["b", "a"]), + # NaNs + (["a", "b", "c"], ["a", "b"], ["a", "b"]), + (["a", "b", "c"], ["a", "b"], ["b", "a"]), + (["b", "a", "c"], ["a", "b"], ["a", "b"]), + (["b", "a", "c"], ["a", "b"], ["a", "b"]), + # Introduce NaNs + (["a", "b", "c"], ["a", "b"], ["a"]), + (["a", "b", "c"], ["a", "b"], ["b"]), + (["b", "a", "c"], ["a", "b"], ["a"]), + (["b", "a", "c"], ["a", "b"], ["a"]), + # No overlap + (["a", "b", "c"], ["a", "b"], ["d", "e"]), + ], + ) + @pytest.mark.parametrize("ordered", [True, False]) + def test_set_dtype_many(self, values, categories, new_categories, ordered): + c = Categorical(values, categories) + expected = Categorical(values, new_categories, ordered) + result = c._set_dtype(expected.dtype) + tm.assert_categorical_equal(result, expected) + + def test_set_dtype_no_overlap(self): + c = Categorical(["a", "b", "c"], ["d", "e"]) + result = c._set_dtype(CategoricalDtype(["a", "b"])) + expected = Categorical([None, None, None], categories=["a", "b"]) + tm.assert_categorical_equal(result, expected) + + def test_codes_dtypes(self): + # GH 8453 + result = Categorical(["foo", "bar", "baz"]) + assert result.codes.dtype == "int8" + + result = Categorical([f"foo{i:05d}" for i in range(400)]) + assert result.codes.dtype == "int16" + + result = Categorical([f"foo{i:05d}" for i in range(40000)]) + assert result.codes.dtype == "int32" + + # adding cats + result = Categorical(["foo", "bar", "baz"]) + assert result.codes.dtype == "int8" + result = result.add_categories([f"foo{i:05d}" for i in range(400)]) + assert result.codes.dtype == "int16" + + # removing cats + result = result.remove_categories([f"foo{i:05d}" for i in range(300)]) + assert result.codes.dtype == "int8" + + def test_iter_python_types(self): + # GH-19909 + cat = Categorical([1, 2]) + assert isinstance(next(iter(cat)), int) + assert isinstance(cat.tolist()[0], int) + + def test_iter_python_types_datetime(self): + cat = Categorical([Timestamp("2017-01-01"), Timestamp("2017-01-02")]) + assert isinstance(next(iter(cat)), Timestamp) + assert isinstance(cat.tolist()[0], Timestamp) + + def test_interval_index_category(self): + # GH 38316 + index = IntervalIndex.from_breaks(np.arange(3, dtype="uint64")) + + result = CategoricalIndex(index).dtype.categories + expected = IntervalIndex.from_arrays( + [0, 1], [1, 2], dtype="interval[uint64, right]" + ) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_indexing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_indexing.py new file mode 100644 index 0000000000000000000000000000000000000000..5e1c5c64fa660f501d2b9d77c9181f47e013267f --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_indexing.py @@ -0,0 +1,388 @@ +import math + +import numpy as np +import pytest + +from pandas import ( + NA, + Categorical, + CategoricalIndex, + Index, + Interval, + IntervalIndex, + NaT, + PeriodIndex, + Series, + Timedelta, + Timestamp, +) +import pandas._testing as tm +import pandas.core.common as com + + +class TestCategoricalIndexingWithFactor: + def test_getitem(self): + factor = Categorical(["a", "b", "b", "a", "a", "c", "c", "c"], ordered=True) + assert factor[0] == "a" + assert factor[-1] == "c" + + subf = factor[[0, 1, 2]] + tm.assert_numpy_array_equal(subf._codes, np.array([0, 1, 1], dtype=np.int8)) + + subf = factor[np.asarray(factor) == "c"] + tm.assert_numpy_array_equal(subf._codes, np.array([2, 2, 2], dtype=np.int8)) + + def test_setitem(self): + factor = Categorical(["a", "b", "b", "a", "a", "c", "c", "c"], ordered=True) + # int/positional + c = factor.copy() + c[0] = "b" + assert c[0] == "b" + c[-1] = "a" + assert c[-1] == "a" + + # boolean + c = factor.copy() + indexer = np.zeros(len(c), dtype="bool") + indexer[0] = True + indexer[-1] = True + c[indexer] = "c" + expected = Categorical(["c", "b", "b", "a", "a", "c", "c", "c"], ordered=True) + + tm.assert_categorical_equal(c, expected) + + @pytest.mark.parametrize( + "other", + [Categorical(["b", "a"]), Categorical(["b", "a"], categories=["b", "a"])], + ) + def test_setitem_same_but_unordered(self, other): + # GH-24142 + target = Categorical(["a", "b"], categories=["a", "b"]) + mask = np.array([True, False]) + target[mask] = other[mask] + expected = Categorical(["b", "b"], categories=["a", "b"]) + tm.assert_categorical_equal(target, expected) + + @pytest.mark.parametrize( + "other", + [ + Categorical(["b", "a"], categories=["b", "a", "c"]), + Categorical(["b", "a"], categories=["a", "b", "c"]), + Categorical(["a", "a"], categories=["a"]), + Categorical(["b", "b"], categories=["b"]), + ], + ) + def test_setitem_different_unordered_raises(self, other): + # GH-24142 + target = Categorical(["a", "b"], categories=["a", "b"]) + mask = np.array([True, False]) + msg = "Cannot set a Categorical with another, without identical categories" + with pytest.raises(TypeError, match=msg): + target[mask] = other[mask] + + @pytest.mark.parametrize( + "other", + [ + Categorical(["b", "a"]), + Categorical(["b", "a"], categories=["b", "a"], ordered=True), + Categorical(["b", "a"], categories=["a", "b", "c"], ordered=True), + ], + ) + def test_setitem_same_ordered_raises(self, other): + # Gh-24142 + target = Categorical(["a", "b"], categories=["a", "b"], ordered=True) + mask = np.array([True, False]) + msg = "Cannot set a Categorical with another, without identical categories" + with pytest.raises(TypeError, match=msg): + target[mask] = other[mask] + + def test_setitem_tuple(self): + # GH#20439 + cat = Categorical([(0, 1), (0, 2), (0, 1)]) + + # This should not raise + cat[1] = cat[0] + assert cat[1] == (0, 1) + + def test_setitem_listlike(self): + # GH#9469 + # properly coerce the input indexers + + cat = Categorical( + np.random.default_rng(2).integers(0, 5, size=150000).astype(np.int8) + ).add_categories([-1000]) + indexer = np.array([100000]).astype(np.int64) + cat[indexer] = -1000 + + # we are asserting the code result here + # which maps to the -1000 category + result = cat.codes[np.array([100000]).astype(np.int64)] + tm.assert_numpy_array_equal(result, np.array([5], dtype="int8")) + + +class TestCategoricalIndexing: + def test_getitem_slice(self): + cat = Categorical(["a", "b", "c", "d", "a", "b", "c"]) + sliced = cat[3] + assert sliced == "d" + + sliced = cat[3:5] + expected = Categorical(["d", "a"], categories=["a", "b", "c", "d"]) + tm.assert_categorical_equal(sliced, expected) + + def test_getitem_listlike(self): + # GH 9469 + # properly coerce the input indexers + + c = Categorical( + np.random.default_rng(2).integers(0, 5, size=150000).astype(np.int8) + ) + result = c.codes[np.array([100000]).astype(np.int64)] + expected = c[np.array([100000]).astype(np.int64)].codes + tm.assert_numpy_array_equal(result, expected) + + def test_periodindex(self): + idx1 = PeriodIndex( + ["2014-01", "2014-01", "2014-02", "2014-02", "2014-03", "2014-03"], + freq="M", + ) + + cat1 = Categorical(idx1) + str(cat1) + exp_arr = np.array([0, 0, 1, 1, 2, 2], dtype=np.int8) + exp_idx = PeriodIndex(["2014-01", "2014-02", "2014-03"], freq="M") + tm.assert_numpy_array_equal(cat1._codes, exp_arr) + tm.assert_index_equal(cat1.categories, exp_idx) + + idx2 = PeriodIndex( + ["2014-03", "2014-03", "2014-02", "2014-01", "2014-03", "2014-01"], + freq="M", + ) + cat2 = Categorical(idx2, ordered=True) + str(cat2) + exp_arr = np.array([2, 2, 1, 0, 2, 0], dtype=np.int8) + exp_idx2 = PeriodIndex(["2014-01", "2014-02", "2014-03"], freq="M") + tm.assert_numpy_array_equal(cat2._codes, exp_arr) + tm.assert_index_equal(cat2.categories, exp_idx2) + + idx3 = PeriodIndex( + [ + "2013-12", + "2013-11", + "2013-10", + "2013-09", + "2013-08", + "2013-07", + "2013-05", + ], + freq="M", + ) + cat3 = Categorical(idx3, ordered=True) + exp_arr = np.array([6, 5, 4, 3, 2, 1, 0], dtype=np.int8) + exp_idx = PeriodIndex( + [ + "2013-05", + "2013-07", + "2013-08", + "2013-09", + "2013-10", + "2013-11", + "2013-12", + ], + freq="M", + ) + tm.assert_numpy_array_equal(cat3._codes, exp_arr) + tm.assert_index_equal(cat3.categories, exp_idx) + + @pytest.mark.parametrize( + "null_val", + [None, np.nan, NaT, NA, math.nan, "NaT", "nat", "NAT", "nan", "NaN", "NAN"], + ) + def test_periodindex_on_null_types(self, null_val): + # GH 46673 + result = PeriodIndex(["2022-04-06", "2022-04-07", null_val], freq="D") + expected = PeriodIndex(["2022-04-06", "2022-04-07", "NaT"], dtype="period[D]") + assert result[2] is NaT + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("new_categories", [[1, 2, 3, 4], [1, 2]]) + def test_categories_assignments_wrong_length_raises(self, new_categories): + cat = Categorical(["a", "b", "c", "a"]) + msg = ( + "new categories need to have the same number of items " + "as the old categories!" + ) + with pytest.raises(ValueError, match=msg): + cat.rename_categories(new_categories) + + # Combinations of sorted/unique: + @pytest.mark.parametrize( + "idx_values", [[1, 2, 3, 4], [1, 3, 2, 4], [1, 3, 3, 4], [1, 2, 2, 4]] + ) + # Combinations of missing/unique + @pytest.mark.parametrize("key_values", [[1, 2], [1, 5], [1, 1], [5, 5]]) + @pytest.mark.parametrize("key_class", [Categorical, CategoricalIndex]) + @pytest.mark.parametrize("dtype", [None, "category", "key"]) + def test_get_indexer_non_unique(self, idx_values, key_values, key_class, dtype): + # GH 21448 + key = key_class(key_values, categories=range(1, 5)) + + if dtype == "key": + dtype = key.dtype + + # Test for flat index and CategoricalIndex with same/different cats: + idx = Index(idx_values, dtype=dtype) + expected, exp_miss = idx.get_indexer_non_unique(key_values) + result, res_miss = idx.get_indexer_non_unique(key) + + tm.assert_numpy_array_equal(expected, result) + tm.assert_numpy_array_equal(exp_miss, res_miss) + + exp_unique = idx.unique().get_indexer(key_values) + res_unique = idx.unique().get_indexer(key) + tm.assert_numpy_array_equal(res_unique, exp_unique) + + def test_where_unobserved_nan(self): + ser = Series(Categorical(["a", "b"])) + result = ser.where([True, False]) + expected = Series(Categorical(["a", None], categories=["a", "b"])) + tm.assert_series_equal(result, expected) + + # all NA + ser = Series(Categorical(["a", "b"])) + result = ser.where([False, False]) + expected = Series(Categorical([None, None], categories=["a", "b"])) + tm.assert_series_equal(result, expected) + + def test_where_unobserved_categories(self): + ser = Series(Categorical(["a", "b", "c"], categories=["d", "c", "b", "a"])) + result = ser.where([True, True, False], other="b") + expected = Series(Categorical(["a", "b", "b"], categories=ser.cat.categories)) + tm.assert_series_equal(result, expected) + + def test_where_other_categorical(self): + ser = Series(Categorical(["a", "b", "c"], categories=["d", "c", "b", "a"])) + other = Categorical(["b", "c", "a"], categories=["a", "c", "b", "d"]) + result = ser.where([True, False, True], other) + expected = Series(Categorical(["a", "c", "c"], dtype=ser.dtype)) + tm.assert_series_equal(result, expected) + + def test_where_new_category_raises(self): + ser = Series(Categorical(["a", "b", "c"])) + msg = "Cannot setitem on a Categorical with a new category" + with pytest.raises(TypeError, match=msg): + ser.where([True, False, True], "d") + + def test_where_ordered_differs_rasies(self): + ser = Series( + Categorical(["a", "b", "c"], categories=["d", "c", "b", "a"], ordered=True) + ) + other = Categorical( + ["b", "c", "a"], categories=["a", "c", "b", "d"], ordered=True + ) + with pytest.raises(TypeError, match="without identical categories"): + ser.where([True, False, True], other) + + +class TestContains: + def test_contains(self): + # GH#21508 + cat = Categorical(list("aabbca"), categories=list("cab")) + + assert "b" in cat + assert "z" not in cat + assert np.nan not in cat + with pytest.raises(TypeError, match="unhashable type: 'list'"): + assert [1] in cat + + # assert codes NOT in index + assert 0 not in cat + assert 1 not in cat + + cat = Categorical(list("aabbca") + [np.nan], categories=list("cab")) + assert np.nan in cat + + @pytest.mark.parametrize( + "item, expected", + [ + (Interval(0, 1), True), + (1.5, True), + (Interval(0.5, 1.5), False), + ("a", False), + (Timestamp(1), False), + (Timedelta(1), False), + ], + ids=str, + ) + def test_contains_interval(self, item, expected): + # GH#23705 + cat = Categorical(IntervalIndex.from_breaks(range(3))) + result = item in cat + assert result is expected + + def test_contains_list(self): + # GH#21729 + cat = Categorical([1, 2, 3]) + + assert "a" not in cat + + with pytest.raises(TypeError, match="unhashable type"): + ["a"] in cat + + with pytest.raises(TypeError, match="unhashable type"): + ["a", "b"] in cat + + +@pytest.mark.parametrize("index", [True, False]) +def test_mask_with_boolean(index): + ser = Series(range(3)) + idx = Categorical([True, False, True]) + if index: + idx = CategoricalIndex(idx) + + assert com.is_bool_indexer(idx) + result = ser[idx] + expected = ser[idx.astype("object")] + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("index", [True, False]) +def test_mask_with_boolean_na_treated_as_false(index): + # https://github.com/pandas-dev/pandas/issues/31503 + ser = Series(range(3)) + idx = Categorical([True, False, None]) + if index: + idx = CategoricalIndex(idx) + + result = ser[idx] + expected = ser[idx.fillna(False)] + + tm.assert_series_equal(result, expected) + + +@pytest.fixture +def non_coercible_categorical(monkeypatch): + """ + Monkeypatch Categorical.__array__ to ensure no implicit conversion. + + Raises + ------ + ValueError + When Categorical.__array__ is called. + """ + + # TODO(Categorical): identify other places where this may be + # useful and move to a conftest.py + def array(self, dtype=None): + raise ValueError("I cannot be converted.") + + with monkeypatch.context() as m: + m.setattr(Categorical, "__array__", array) + yield + + +def test_series_at(): + arr = Categorical(["a", "b", "c"]) + ser = Series(arr) + result = ser.at[0] + assert result == "a" diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_map.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_map.py new file mode 100644 index 0000000000000000000000000000000000000000..3d41b7cc7094d237fa8d31501ce90a99b04fe4e6 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_map.py @@ -0,0 +1,154 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + Categorical, + Index, + Series, +) +import pandas._testing as tm + + +@pytest.fixture(params=[None, "ignore"]) +def na_action(request): + return request.param + + +@pytest.mark.parametrize( + "data, categories", + [ + (list("abcbca"), list("cab")), + (pd.interval_range(0, 3).repeat(3), pd.interval_range(0, 3)), + ], + ids=["string", "interval"], +) +def test_map_str(data, categories, ordered, na_action): + # GH 31202 - override base class since we want to maintain categorical/ordered + cat = Categorical(data, categories=categories, ordered=ordered) + result = cat.map(str, na_action=na_action) + expected = Categorical( + map(str, data), categories=map(str, categories), ordered=ordered + ) + tm.assert_categorical_equal(result, expected) + + +def test_map(na_action): + cat = Categorical(list("ABABC"), categories=list("CBA"), ordered=True) + result = cat.map(lambda x: x.lower(), na_action=na_action) + exp = Categorical(list("ababc"), categories=list("cba"), ordered=True) + tm.assert_categorical_equal(result, exp) + + cat = Categorical(list("ABABC"), categories=list("BAC"), ordered=False) + result = cat.map(lambda x: x.lower(), na_action=na_action) + exp = Categorical(list("ababc"), categories=list("bac"), ordered=False) + tm.assert_categorical_equal(result, exp) + + # GH 12766: Return an index not an array + result = cat.map(lambda x: 1, na_action=na_action) + exp = Index(np.array([1] * 5, dtype=np.int64)) + tm.assert_index_equal(result, exp) + + # change categories dtype + cat = Categorical(list("ABABC"), categories=list("BAC"), ordered=False) + + def f(x): + return {"A": 10, "B": 20, "C": 30}.get(x) + + result = cat.map(f, na_action=na_action) + exp = Categorical([10, 20, 10, 20, 30], categories=[20, 10, 30], ordered=False) + tm.assert_categorical_equal(result, exp) + + mapper = Series([10, 20, 30], index=["A", "B", "C"]) + result = cat.map(mapper, na_action=na_action) + tm.assert_categorical_equal(result, exp) + + result = cat.map({"A": 10, "B": 20, "C": 30}, na_action=na_action) + tm.assert_categorical_equal(result, exp) + + +@pytest.mark.parametrize( + ("data", "f", "expected"), + ( + ([1, 1, np.nan], pd.isna, Index([False, False, True])), + ([1, 2, np.nan], pd.isna, Index([False, False, True])), + ([1, 1, np.nan], {1: False}, Categorical([False, False, np.nan])), + ([1, 2, np.nan], {1: False, 2: False}, Index([False, False, np.nan])), + ( + [1, 1, np.nan], + Series([False, False]), + Categorical([False, False, np.nan]), + ), + ( + [1, 2, np.nan], + Series([False] * 3), + Index([False, False, np.nan]), + ), + ), +) +def test_map_with_nan_none(data, f, expected): # GH 24241 + values = Categorical(data) + result = values.map(f, na_action=None) + if isinstance(expected, Categorical): + tm.assert_categorical_equal(result, expected) + else: + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize( + ("data", "f", "expected"), + ( + ([1, 1, np.nan], pd.isna, Categorical([False, False, np.nan])), + ([1, 2, np.nan], pd.isna, Index([False, False, np.nan])), + ([1, 1, np.nan], {1: False}, Categorical([False, False, np.nan])), + ([1, 2, np.nan], {1: False, 2: False}, Index([False, False, np.nan])), + ( + [1, 1, np.nan], + Series([False, False]), + Categorical([False, False, np.nan]), + ), + ( + [1, 2, np.nan], + Series([False, False, False]), + Index([False, False, np.nan]), + ), + ), +) +def test_map_with_nan_ignore(data, f, expected): # GH 24241 + values = Categorical(data) + result = values.map(f, na_action="ignore") + if data[1] == 1: + tm.assert_categorical_equal(result, expected) + else: + tm.assert_index_equal(result, expected) + + +def test_map_with_dict_or_series(na_action): + orig_values = ["a", "B", 1, "a"] + new_values = ["one", 2, 3.0, "one"] + cat = Categorical(orig_values) + + mapper = Series(new_values[:-1], index=orig_values[:-1]) + result = cat.map(mapper, na_action=na_action) + + # Order of categories in result can be different + expected = Categorical(new_values, categories=[3.0, 2, "one"]) + tm.assert_categorical_equal(result, expected) + + mapper = dict(zip(orig_values[:-1], new_values[:-1])) + result = cat.map(mapper, na_action=na_action) + # Order of categories in result can be different + tm.assert_categorical_equal(result, expected) + + +def test_map_na_action_no_default_deprecated(): + # GH51645 + cat = Categorical(["a", "b", "c"]) + msg = ( + "The default value of 'ignore' for the `na_action` parameter in " + "pandas.Categorical.map is deprecated and will be " + "changed to 'None' in a future version. Please set na_action to the " + "desired value to avoid seeing this warning" + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + cat.map(lambda x: x) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_missing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_missing.py new file mode 100644 index 0000000000000000000000000000000000000000..0eeb01b74608890daf81fef083adb29e797e57ce --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_missing.py @@ -0,0 +1,216 @@ +import collections + +import numpy as np +import pytest + +from pandas.core.dtypes.dtypes import CategoricalDtype + +import pandas as pd +from pandas import ( + Categorical, + DataFrame, + Index, + Series, + isna, +) +import pandas._testing as tm + + +class TestCategoricalMissing: + def test_isna(self): + exp = np.array([False, False, True]) + cat = Categorical(["a", "b", np.nan]) + res = cat.isna() + + tm.assert_numpy_array_equal(res, exp) + + def test_na_flags_int_categories(self): + # #1457 + + categories = list(range(10)) + labels = np.random.default_rng(2).integers(0, 10, 20) + labels[::5] = -1 + + cat = Categorical(labels, categories) + repr(cat) + + tm.assert_numpy_array_equal(isna(cat), labels == -1) + + def test_nan_handling(self): + # Nans are represented as -1 in codes + c = Categorical(["a", "b", np.nan, "a"]) + tm.assert_index_equal(c.categories, Index(["a", "b"])) + tm.assert_numpy_array_equal(c._codes, np.array([0, 1, -1, 0], dtype=np.int8)) + c[1] = np.nan + tm.assert_index_equal(c.categories, Index(["a", "b"])) + tm.assert_numpy_array_equal(c._codes, np.array([0, -1, -1, 0], dtype=np.int8)) + + # Adding nan to categories should make assigned nan point to the + # category! + c = Categorical(["a", "b", np.nan, "a"]) + tm.assert_index_equal(c.categories, Index(["a", "b"])) + tm.assert_numpy_array_equal(c._codes, np.array([0, 1, -1, 0], dtype=np.int8)) + + def test_set_dtype_nans(self): + c = Categorical(["a", "b", np.nan]) + result = c._set_dtype(CategoricalDtype(["a", "c"])) + tm.assert_numpy_array_equal(result.codes, np.array([0, -1, -1], dtype="int8")) + + def test_set_item_nan(self): + cat = Categorical([1, 2, 3]) + cat[1] = np.nan + + exp = Categorical([1, np.nan, 3], categories=[1, 2, 3]) + tm.assert_categorical_equal(cat, exp) + + @pytest.mark.parametrize( + "fillna_kwargs, msg", + [ + ( + {"value": 1, "method": "ffill"}, + "Cannot specify both 'value' and 'method'.", + ), + ({}, "Must specify a fill 'value' or 'method'."), + ({"method": "bad"}, "Invalid fill method. Expecting .* bad"), + ( + {"value": Series([1, 2, 3, 4, "a"])}, + "Cannot setitem on a Categorical with a new category", + ), + ], + ) + def test_fillna_raises(self, fillna_kwargs, msg): + # https://github.com/pandas-dev/pandas/issues/19682 + # https://github.com/pandas-dev/pandas/issues/13628 + cat = Categorical([1, 2, 3, None, None]) + + if len(fillna_kwargs) == 1 and "value" in fillna_kwargs: + err = TypeError + else: + err = ValueError + + with pytest.raises(err, match=msg): + cat.fillna(**fillna_kwargs) + + @pytest.mark.parametrize("named", [True, False]) + def test_fillna_iterable_category(self, named): + # https://github.com/pandas-dev/pandas/issues/21097 + if named: + Point = collections.namedtuple("Point", "x y") + else: + Point = lambda *args: args # tuple + cat = Categorical(np.array([Point(0, 0), Point(0, 1), None], dtype=object)) + result = cat.fillna(Point(0, 0)) + expected = Categorical([Point(0, 0), Point(0, 1), Point(0, 0)]) + + tm.assert_categorical_equal(result, expected) + + # Case where the Point is not among our categories; we want ValueError, + # not NotImplementedError GH#41914 + cat = Categorical(np.array([Point(1, 0), Point(0, 1), None], dtype=object)) + msg = "Cannot setitem on a Categorical with a new category" + with pytest.raises(TypeError, match=msg): + cat.fillna(Point(0, 0)) + + def test_fillna_array(self): + # accept Categorical or ndarray value if it holds appropriate values + cat = Categorical(["A", "B", "C", None, None]) + + other = cat.fillna("C") + result = cat.fillna(other) + tm.assert_categorical_equal(result, other) + assert isna(cat[-1]) # didn't modify original inplace + + other = np.array(["A", "B", "C", "B", "A"]) + result = cat.fillna(other) + expected = Categorical(["A", "B", "C", "B", "A"], dtype=cat.dtype) + tm.assert_categorical_equal(result, expected) + assert isna(cat[-1]) # didn't modify original inplace + + @pytest.mark.parametrize( + "values, expected", + [ + ([1, 2, 3], np.array([False, False, False])), + ([1, 2, np.nan], np.array([False, False, True])), + ([1, 2, np.inf], np.array([False, False, True])), + ([1, 2, pd.NA], np.array([False, False, True])), + ], + ) + def test_use_inf_as_na(self, values, expected): + # https://github.com/pandas-dev/pandas/issues/33594 + msg = "use_inf_as_na option is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + with pd.option_context("mode.use_inf_as_na", True): + cat = Categorical(values) + result = cat.isna() + tm.assert_numpy_array_equal(result, expected) + + result = Series(cat).isna() + expected = Series(expected) + tm.assert_series_equal(result, expected) + + result = DataFrame(cat).isna() + expected = DataFrame(expected) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "values, expected", + [ + ([1, 2, 3], np.array([False, False, False])), + ([1, 2, np.nan], np.array([False, False, True])), + ([1, 2, np.inf], np.array([False, False, True])), + ([1, 2, pd.NA], np.array([False, False, True])), + ], + ) + def test_use_inf_as_na_outside_context(self, values, expected): + # https://github.com/pandas-dev/pandas/issues/33594 + # Using isna directly for Categorical will fail in general here + cat = Categorical(values) + + msg = "use_inf_as_na option is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + with pd.option_context("mode.use_inf_as_na", True): + result = isna(cat) + tm.assert_numpy_array_equal(result, expected) + + result = isna(Series(cat)) + expected = Series(expected) + tm.assert_series_equal(result, expected) + + result = isna(DataFrame(cat)) + expected = DataFrame(expected) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "a1, a2, categories", + [ + (["a", "b", "c"], [np.nan, "a", "b"], ["a", "b", "c"]), + ([1, 2, 3], [np.nan, 1, 2], [1, 2, 3]), + ], + ) + def test_compare_categorical_with_missing(self, a1, a2, categories): + # GH 28384 + cat_type = CategoricalDtype(categories) + + # != + result = Series(a1, dtype=cat_type) != Series(a2, dtype=cat_type) + expected = Series(a1) != Series(a2) + tm.assert_series_equal(result, expected) + + # == + result = Series(a1, dtype=cat_type) == Series(a2, dtype=cat_type) + expected = Series(a1) == Series(a2) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize( + "na_value, dtype", + [ + (pd.NaT, "datetime64[ns]"), + (None, "float64"), + (np.nan, "float64"), + (pd.NA, "float64"), + ], + ) + def test_categorical_only_missing_values_no_cast(self, na_value, dtype): + # GH#44900 + result = Categorical([na_value, na_value]) + tm.assert_index_equal(result.categories, Index([], dtype=dtype)) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_operators.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_operators.py new file mode 100644 index 0000000000000000000000000000000000000000..4174d2adc810b872e7ec0b1e3ca820e3d2c3920d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_operators.py @@ -0,0 +1,414 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + Categorical, + DataFrame, + Series, + Timestamp, + date_range, +) +import pandas._testing as tm + + +class TestCategoricalOpsWithFactor: + def test_categories_none_comparisons(self): + factor = Categorical(["a", "b", "b", "a", "a", "c", "c", "c"], ordered=True) + tm.assert_categorical_equal(factor, factor) + + def test_comparisons(self): + factor = Categorical(["a", "b", "b", "a", "a", "c", "c", "c"], ordered=True) + result = factor[factor == "a"] + expected = factor[np.asarray(factor) == "a"] + tm.assert_categorical_equal(result, expected) + + result = factor[factor != "a"] + expected = factor[np.asarray(factor) != "a"] + tm.assert_categorical_equal(result, expected) + + result = factor[factor < "c"] + expected = factor[np.asarray(factor) < "c"] + tm.assert_categorical_equal(result, expected) + + result = factor[factor > "a"] + expected = factor[np.asarray(factor) > "a"] + tm.assert_categorical_equal(result, expected) + + result = factor[factor >= "b"] + expected = factor[np.asarray(factor) >= "b"] + tm.assert_categorical_equal(result, expected) + + result = factor[factor <= "b"] + expected = factor[np.asarray(factor) <= "b"] + tm.assert_categorical_equal(result, expected) + + n = len(factor) + + other = factor[np.random.default_rng(2).permutation(n)] + result = factor == other + expected = np.asarray(factor) == np.asarray(other) + tm.assert_numpy_array_equal(result, expected) + + result = factor == "d" + expected = np.zeros(len(factor), dtype=bool) + tm.assert_numpy_array_equal(result, expected) + + # comparisons with categoricals + cat_rev = Categorical(["a", "b", "c"], categories=["c", "b", "a"], ordered=True) + cat_rev_base = Categorical( + ["b", "b", "b"], categories=["c", "b", "a"], ordered=True + ) + cat = Categorical(["a", "b", "c"], ordered=True) + cat_base = Categorical(["b", "b", "b"], categories=cat.categories, ordered=True) + + # comparisons need to take categories ordering into account + res_rev = cat_rev > cat_rev_base + exp_rev = np.array([True, False, False]) + tm.assert_numpy_array_equal(res_rev, exp_rev) + + res_rev = cat_rev < cat_rev_base + exp_rev = np.array([False, False, True]) + tm.assert_numpy_array_equal(res_rev, exp_rev) + + res = cat > cat_base + exp = np.array([False, False, True]) + tm.assert_numpy_array_equal(res, exp) + + # Only categories with same categories can be compared + msg = "Categoricals can only be compared if 'categories' are the same" + with pytest.raises(TypeError, match=msg): + cat > cat_rev + + cat_rev_base2 = Categorical(["b", "b", "b"], categories=["c", "b", "a", "d"]) + + with pytest.raises(TypeError, match=msg): + cat_rev > cat_rev_base2 + + # Only categories with same ordering information can be compared + cat_unordered = cat.set_ordered(False) + assert not (cat > cat).any() + + with pytest.raises(TypeError, match=msg): + cat > cat_unordered + + # comparison (in both directions) with Series will raise + s = Series(["b", "b", "b"], dtype=object) + msg = ( + "Cannot compare a Categorical for op __gt__ with type " + r"" + ) + with pytest.raises(TypeError, match=msg): + cat > s + with pytest.raises(TypeError, match=msg): + cat_rev > s + with pytest.raises(TypeError, match=msg): + s < cat + with pytest.raises(TypeError, match=msg): + s < cat_rev + + # comparison with numpy.array will raise in both direction, but only on + # newer numpy versions + a = np.array(["b", "b", "b"], dtype=object) + with pytest.raises(TypeError, match=msg): + cat > a + with pytest.raises(TypeError, match=msg): + cat_rev > a + + # Make sure that unequal comparison take the categories order in + # account + cat_rev = Categorical(list("abc"), categories=list("cba"), ordered=True) + exp = np.array([True, False, False]) + res = cat_rev > "b" + tm.assert_numpy_array_equal(res, exp) + + # check that zero-dim array gets unboxed + res = cat_rev > np.array("b") + tm.assert_numpy_array_equal(res, exp) + + +class TestCategoricalOps: + @pytest.mark.parametrize( + "categories", + [["a", "b"], [0, 1], [Timestamp("2019"), Timestamp("2020")]], + ) + def test_not_equal_with_na(self, categories): + # https://github.com/pandas-dev/pandas/issues/32276 + c1 = Categorical.from_codes([-1, 0], categories=categories) + c2 = Categorical.from_codes([0, 1], categories=categories) + + result = c1 != c2 + + assert result.all() + + def test_compare_frame(self): + # GH#24282 check that Categorical.__cmp__(DataFrame) defers to frame + data = ["a", "b", 2, "a"] + cat = Categorical(data) + + df = DataFrame(cat) + + result = cat == df.T + expected = DataFrame([[True, True, True, True]]) + tm.assert_frame_equal(result, expected) + + result = cat[::-1] != df.T + expected = DataFrame([[False, True, True, False]]) + tm.assert_frame_equal(result, expected) + + def test_compare_frame_raises(self, comparison_op): + # alignment raises unless we transpose + op = comparison_op + cat = Categorical(["a", "b", 2, "a"]) + df = DataFrame(cat) + msg = "Unable to coerce to Series, length must be 1: given 4" + with pytest.raises(ValueError, match=msg): + op(cat, df) + + def test_datetime_categorical_comparison(self): + dt_cat = Categorical(date_range("2014-01-01", periods=3), ordered=True) + tm.assert_numpy_array_equal(dt_cat > dt_cat[0], np.array([False, True, True])) + tm.assert_numpy_array_equal(dt_cat[0] < dt_cat, np.array([False, True, True])) + + def test_reflected_comparison_with_scalars(self): + # GH8658 + cat = Categorical([1, 2, 3], ordered=True) + tm.assert_numpy_array_equal(cat > cat[0], np.array([False, True, True])) + tm.assert_numpy_array_equal(cat[0] < cat, np.array([False, True, True])) + + def test_comparison_with_unknown_scalars(self): + # https://github.com/pandas-dev/pandas/issues/9836#issuecomment-92123057 + # and following comparisons with scalars not in categories should raise + # for unequal comps, but not for equal/not equal + cat = Categorical([1, 2, 3], ordered=True) + + msg = "Invalid comparison between dtype=category and int" + with pytest.raises(TypeError, match=msg): + cat < 4 + with pytest.raises(TypeError, match=msg): + cat > 4 + with pytest.raises(TypeError, match=msg): + 4 < cat + with pytest.raises(TypeError, match=msg): + 4 > cat + + tm.assert_numpy_array_equal(cat == 4, np.array([False, False, False])) + tm.assert_numpy_array_equal(cat != 4, np.array([True, True, True])) + + def test_comparison_with_tuple(self): + cat = Categorical(np.array(["foo", (0, 1), 3, (0, 1)], dtype=object)) + + result = cat == "foo" + expected = np.array([True, False, False, False], dtype=bool) + tm.assert_numpy_array_equal(result, expected) + + result = cat == (0, 1) + expected = np.array([False, True, False, True], dtype=bool) + tm.assert_numpy_array_equal(result, expected) + + result = cat != (0, 1) + tm.assert_numpy_array_equal(result, ~expected) + + @pytest.mark.filterwarnings("ignore::RuntimeWarning") + def test_comparison_of_ordered_categorical_with_nan_to_scalar( + self, compare_operators_no_eq_ne + ): + # https://github.com/pandas-dev/pandas/issues/26504 + # BUG: fix ordered categorical comparison with missing values (#26504 ) + # and following comparisons with scalars in categories with missing + # values should be evaluated as False + + cat = Categorical([1, 2, 3, None], categories=[1, 2, 3], ordered=True) + scalar = 2 + expected = getattr(np.array(cat), compare_operators_no_eq_ne)(scalar) + actual = getattr(cat, compare_operators_no_eq_ne)(scalar) + tm.assert_numpy_array_equal(actual, expected) + + @pytest.mark.filterwarnings("ignore::RuntimeWarning") + def test_comparison_of_ordered_categorical_with_nan_to_listlike( + self, compare_operators_no_eq_ne + ): + # https://github.com/pandas-dev/pandas/issues/26504 + # and following comparisons of missing values in ordered Categorical + # with listlike should be evaluated as False + + cat = Categorical([1, 2, 3, None], categories=[1, 2, 3], ordered=True) + other = Categorical([2, 2, 2, 2], categories=[1, 2, 3], ordered=True) + expected = getattr(np.array(cat), compare_operators_no_eq_ne)(2) + actual = getattr(cat, compare_operators_no_eq_ne)(other) + tm.assert_numpy_array_equal(actual, expected) + + @pytest.mark.parametrize( + "data,reverse,base", + [(list("abc"), list("cba"), list("bbb")), ([1, 2, 3], [3, 2, 1], [2, 2, 2])], + ) + def test_comparisons(self, data, reverse, base): + cat_rev = Series(Categorical(data, categories=reverse, ordered=True)) + cat_rev_base = Series(Categorical(base, categories=reverse, ordered=True)) + cat = Series(Categorical(data, ordered=True)) + cat_base = Series( + Categorical(base, categories=cat.cat.categories, ordered=True) + ) + s = Series(base, dtype=object if base == list("bbb") else None) + a = np.array(base) + + # comparisons need to take categories ordering into account + res_rev = cat_rev > cat_rev_base + exp_rev = Series([True, False, False]) + tm.assert_series_equal(res_rev, exp_rev) + + res_rev = cat_rev < cat_rev_base + exp_rev = Series([False, False, True]) + tm.assert_series_equal(res_rev, exp_rev) + + res = cat > cat_base + exp = Series([False, False, True]) + tm.assert_series_equal(res, exp) + + scalar = base[1] + res = cat > scalar + exp = Series([False, False, True]) + exp2 = cat.values > scalar + tm.assert_series_equal(res, exp) + tm.assert_numpy_array_equal(res.values, exp2) + res_rev = cat_rev > scalar + exp_rev = Series([True, False, False]) + exp_rev2 = cat_rev.values > scalar + tm.assert_series_equal(res_rev, exp_rev) + tm.assert_numpy_array_equal(res_rev.values, exp_rev2) + + # Only categories with same categories can be compared + msg = "Categoricals can only be compared if 'categories' are the same" + with pytest.raises(TypeError, match=msg): + cat > cat_rev + + # categorical cannot be compared to Series or numpy array, and also + # not the other way around + msg = ( + "Cannot compare a Categorical for op __gt__ with type " + r"" + ) + with pytest.raises(TypeError, match=msg): + cat > s + with pytest.raises(TypeError, match=msg): + cat_rev > s + with pytest.raises(TypeError, match=msg): + cat > a + with pytest.raises(TypeError, match=msg): + cat_rev > a + + with pytest.raises(TypeError, match=msg): + s < cat + with pytest.raises(TypeError, match=msg): + s < cat_rev + + with pytest.raises(TypeError, match=msg): + a < cat + with pytest.raises(TypeError, match=msg): + a < cat_rev + + @pytest.mark.parametrize( + "ctor", + [ + lambda *args, **kwargs: Categorical(*args, **kwargs), + lambda *args, **kwargs: Series(Categorical(*args, **kwargs)), + ], + ) + def test_unordered_different_order_equal(self, ctor): + # https://github.com/pandas-dev/pandas/issues/16014 + c1 = ctor(["a", "b"], categories=["a", "b"], ordered=False) + c2 = ctor(["a", "b"], categories=["b", "a"], ordered=False) + assert (c1 == c2).all() + + c1 = ctor(["a", "b"], categories=["a", "b"], ordered=False) + c2 = ctor(["b", "a"], categories=["b", "a"], ordered=False) + assert (c1 != c2).all() + + c1 = ctor(["a", "a"], categories=["a", "b"], ordered=False) + c2 = ctor(["b", "b"], categories=["b", "a"], ordered=False) + assert (c1 != c2).all() + + c1 = ctor(["a", "a"], categories=["a", "b"], ordered=False) + c2 = ctor(["a", "b"], categories=["b", "a"], ordered=False) + result = c1 == c2 + tm.assert_numpy_array_equal(np.array(result), np.array([True, False])) + + def test_unordered_different_categories_raises(self): + c1 = Categorical(["a", "b"], categories=["a", "b"], ordered=False) + c2 = Categorical(["a", "c"], categories=["c", "a"], ordered=False) + + with pytest.raises(TypeError, match=("Categoricals can only be compared")): + c1 == c2 + + def test_compare_different_lengths(self): + c1 = Categorical([], categories=["a", "b"]) + c2 = Categorical([], categories=["a"]) + + msg = "Categoricals can only be compared if 'categories' are the same." + with pytest.raises(TypeError, match=msg): + c1 == c2 + + def test_compare_unordered_different_order(self): + # https://github.com/pandas-dev/pandas/issues/16603#issuecomment- + # 349290078 + a = Categorical(["a"], categories=["a", "b"]) + b = Categorical(["b"], categories=["b", "a"]) + assert not a.equals(b) + + def test_numeric_like_ops(self): + df = DataFrame({"value": np.random.default_rng(2).integers(0, 10000, 100)}) + labels = [f"{i} - {i + 499}" for i in range(0, 10000, 500)] + cat_labels = Categorical(labels, labels) + + df = df.sort_values(by=["value"], ascending=True) + df["value_group"] = pd.cut( + df.value, range(0, 10500, 500), right=False, labels=cat_labels + ) + + # numeric ops should not succeed + for op, str_rep in [ + ("__add__", r"\+"), + ("__sub__", "-"), + ("__mul__", r"\*"), + ("__truediv__", "/"), + ]: + msg = f"Series cannot perform the operation {str_rep}|unsupported operand" + with pytest.raises(TypeError, match=msg): + getattr(df, op)(df) + + # reduction ops should not succeed (unless specifically defined, e.g. + # min/max) + s = df["value_group"] + for op in ["kurt", "skew", "var", "std", "mean", "sum", "median"]: + msg = f"does not support reduction '{op}'" + with pytest.raises(TypeError, match=msg): + getattr(s, op)(numeric_only=False) + + def test_numeric_like_ops_series(self): + # numpy ops + s = Series(Categorical([1, 2, 3, 4])) + with pytest.raises(TypeError, match="does not support reduction 'sum'"): + np.sum(s) + + @pytest.mark.parametrize( + "op, str_rep", + [ + ("__add__", r"\+"), + ("__sub__", "-"), + ("__mul__", r"\*"), + ("__truediv__", "/"), + ], + ) + def test_numeric_like_ops_series_arith(self, op, str_rep): + # numeric ops on a Series + s = Series(Categorical([1, 2, 3, 4])) + msg = f"Series cannot perform the operation {str_rep}|unsupported operand" + with pytest.raises(TypeError, match=msg): + getattr(s, op)(2) + + def test_numeric_like_ops_series_invalid(self): + # invalid ufunc + s = Series(Categorical([1, 2, 3, 4])) + msg = "Object with dtype category cannot perform the numpy op log" + with pytest.raises(TypeError, match=msg): + np.log(s) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_replace.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_replace.py new file mode 100644 index 0000000000000000000000000000000000000000..3c677142846d73f7cfd08c6681ff0d7814b55bd1 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_replace.py @@ -0,0 +1,111 @@ +import pytest + +import pandas as pd +from pandas import Categorical +import pandas._testing as tm + + +@pytest.mark.parametrize( + "to_replace,value,expected,flip_categories", + [ + # one-to-one + (1, 2, [2, 2, 3], False), + (1, 4, [4, 2, 3], False), + (4, 1, [1, 2, 3], False), + (5, 6, [1, 2, 3], False), + # many-to-one + ([1], 2, [2, 2, 3], False), + ([1, 2], 3, [3, 3, 3], False), + ([1, 2], 4, [4, 4, 3], False), + ((1, 2, 4), 5, [5, 5, 3], False), + ((5, 6), 2, [1, 2, 3], False), + ([1], [2], [2, 2, 3], False), + ([1, 4], [5, 2], [5, 2, 3], False), + # GH49404: overlap between to_replace and value + ([1, 2, 3], [2, 3, 4], [2, 3, 4], False), + # GH50872, GH46884: replace with null + (1, None, [None, 2, 3], False), + (1, pd.NA, [None, 2, 3], False), + # check_categorical sorts categories, which crashes on mixed dtypes + (3, "4", [1, 2, "4"], False), + ([1, 2, "3"], "5", ["5", "5", 3], True), + ], +) +@pytest.mark.filterwarnings( + "ignore:.*with CategoricalDtype is deprecated:FutureWarning" +) +def test_replace_categorical_series(to_replace, value, expected, flip_categories): + # GH 31720 + + ser = pd.Series([1, 2, 3], dtype="category") + result = ser.replace(to_replace, value) + expected = pd.Series(expected, dtype="category") + ser.replace(to_replace, value, inplace=True) + + if flip_categories: + expected = expected.cat.set_categories(expected.cat.categories[::-1]) + + tm.assert_series_equal(expected, result, check_category_order=False) + tm.assert_series_equal(expected, ser, check_category_order=False) + + +@pytest.mark.parametrize( + "to_replace, value, result, expected_error_msg", + [ + ("b", "c", ["a", "c"], "Categorical.categories are different"), + ("c", "d", ["a", "b"], None), + # https://github.com/pandas-dev/pandas/issues/33288 + ("a", "a", ["a", "b"], None), + ("b", None, ["a", None], "Categorical.categories length are different"), + ], +) +def test_replace_categorical(to_replace, value, result, expected_error_msg): + # GH#26988 + cat = Categorical(["a", "b"]) + expected = Categorical(result) + msg = ( + r"The behavior of Series\.replace \(and DataFrame.replace\) " + "with CategoricalDtype" + ) + warn = FutureWarning if expected_error_msg is not None else None + with tm.assert_produces_warning(warn, match=msg): + result = pd.Series(cat, copy=False).replace(to_replace, value)._values + + tm.assert_categorical_equal(result, expected) + if to_replace == "b": # the "c" test is supposed to be unchanged + with pytest.raises(AssertionError, match=expected_error_msg): + # ensure non-inplace call does not affect original + tm.assert_categorical_equal(cat, expected) + + ser = pd.Series(cat, copy=False) + with tm.assert_produces_warning(warn, match=msg): + ser.replace(to_replace, value, inplace=True) + tm.assert_categorical_equal(cat, expected) + + +def test_replace_categorical_ea_dtype(): + # GH49404 + cat = Categorical(pd.array(["a", "b"], dtype="string")) + msg = ( + r"The behavior of Series\.replace \(and DataFrame.replace\) " + "with CategoricalDtype" + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + result = pd.Series(cat).replace(["a", "b"], ["c", pd.NA])._values + expected = Categorical(pd.array(["c", pd.NA], dtype="string")) + tm.assert_categorical_equal(result, expected) + + +def test_replace_maintain_ordering(): + # GH51016 + dtype = pd.CategoricalDtype([0, 1, 2], ordered=True) + ser = pd.Series([0, 1, 2], dtype=dtype) + msg = ( + r"The behavior of Series\.replace \(and DataFrame.replace\) " + "with CategoricalDtype" + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + result = ser.replace(0, 2) + expected_dtype = pd.CategoricalDtype([1, 2], ordered=True) + expected = pd.Series([2, 1, 2], dtype=expected_dtype) + tm.assert_series_equal(expected, result, check_category_order=True) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_repr.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_repr.py new file mode 100644 index 0000000000000000000000000000000000000000..7929dfc9270342f188493cc9d51cc8ac013a43b5 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_repr.py @@ -0,0 +1,545 @@ +import numpy as np +import pytest + +from pandas._config import using_string_dtype + +from pandas import ( + Categorical, + CategoricalDtype, + CategoricalIndex, + Index, + Series, + date_range, + option_context, + period_range, + timedelta_range, +) + + +class TestCategoricalReprWithFactor: + def test_print(self, using_infer_string): + factor = Categorical(["a", "b", "b", "a", "a", "c", "c", "c"], ordered=True) + dtype = "str" if using_infer_string else "object" + expected = [ + "['a', 'b', 'b', 'a', 'a', 'c', 'c', 'c']", + f"Categories (3, {dtype}): ['a' < 'b' < 'c']", + ] + expected = "\n".join(expected) + actual = repr(factor) + assert actual == expected + + +class TestCategoricalRepr: + def test_big_print(self): + codes = np.array([0, 1, 2, 0, 1, 2] * 100) + dtype = CategoricalDtype(categories=Index(["a", "b", "c"], dtype=object)) + factor = Categorical.from_codes(codes, dtype=dtype) + expected = [ + "['a', 'b', 'c', 'a', 'b', ..., 'b', 'c', 'a', 'b', 'c']", + "Length: 600", + "Categories (3, object): ['a', 'b', 'c']", + ] + expected = "\n".join(expected) + + actual = repr(factor) + + assert actual == expected + + def test_empty_print(self): + factor = Categorical([], Index(["a", "b", "c"], dtype=object)) + expected = "[], Categories (3, object): ['a', 'b', 'c']" + actual = repr(factor) + assert actual == expected + + assert expected == actual + factor = Categorical([], Index(["a", "b", "c"], dtype=object), ordered=True) + expected = "[], Categories (3, object): ['a' < 'b' < 'c']" + actual = repr(factor) + assert expected == actual + + factor = Categorical([], []) + expected = "[], Categories (0, object): []" + assert expected == repr(factor) + + def test_print_none_width(self): + # GH10087 + a = Series(Categorical([1, 2, 3, 4])) + exp = ( + "0 1\n1 2\n2 3\n3 4\n" + "dtype: category\nCategories (4, int64): [1, 2, 3, 4]" + ) + + with option_context("display.width", None): + assert exp == repr(a) + + @pytest.mark.skipif( + using_string_dtype(), + reason="Change once infer_string is set to True by default", + ) + def test_unicode_print(self): + c = Categorical(["aaaaa", "bb", "cccc"] * 20) + expected = """\ +['aaaaa', 'bb', 'cccc', 'aaaaa', 'bb', ..., 'bb', 'cccc', 'aaaaa', 'bb', 'cccc'] +Length: 60 +Categories (3, object): ['aaaaa', 'bb', 'cccc']""" + + assert repr(c) == expected + + c = Categorical(["ああああ", "いいいいい", "ううううううう"] * 20) + expected = """\ +['ああああ', 'いいいいい', 'ううううううう', 'ああああ', 'いいいいい', ..., 'いいいいい', 'ううううううう', 'ああああ', 'いいいいい', 'ううううううう'] +Length: 60 +Categories (3, object): ['ああああ', 'いいいいい', 'ううううううう']""" # noqa: E501 + + assert repr(c) == expected + + # unicode option should not affect to Categorical, as it doesn't care + # the repr width + with option_context("display.unicode.east_asian_width", True): + c = Categorical(["ああああ", "いいいいい", "ううううううう"] * 20) + expected = """['ああああ', 'いいいいい', 'ううううううう', 'ああああ', 'いいいいい', ..., 'いいいいい', 'ううううううう', 'ああああ', 'いいいいい', 'ううううううう'] +Length: 60 +Categories (3, object): ['ああああ', 'いいいいい', 'ううううううう']""" # noqa: E501 + + assert repr(c) == expected + + def test_categorical_repr(self): + c = Categorical([1, 2, 3]) + exp = """[1, 2, 3] +Categories (3, int64): [1, 2, 3]""" + + assert repr(c) == exp + + c = Categorical([1, 2, 3, 1, 2, 3], categories=[1, 2, 3]) + exp = """[1, 2, 3, 1, 2, 3] +Categories (3, int64): [1, 2, 3]""" + + assert repr(c) == exp + + c = Categorical([1, 2, 3, 4, 5] * 10) + exp = """[1, 2, 3, 4, 5, ..., 1, 2, 3, 4, 5] +Length: 50 +Categories (5, int64): [1, 2, 3, 4, 5]""" + + assert repr(c) == exp + + c = Categorical(np.arange(20, dtype=np.int64)) + exp = """[0, 1, 2, 3, 4, ..., 15, 16, 17, 18, 19] +Length: 20 +Categories (20, int64): [0, 1, 2, 3, ..., 16, 17, 18, 19]""" + + assert repr(c) == exp + + def test_categorical_repr_ordered(self): + c = Categorical([1, 2, 3], ordered=True) + exp = """[1, 2, 3] +Categories (3, int64): [1 < 2 < 3]""" + + assert repr(c) == exp + + c = Categorical([1, 2, 3, 1, 2, 3], categories=[1, 2, 3], ordered=True) + exp = """[1, 2, 3, 1, 2, 3] +Categories (3, int64): [1 < 2 < 3]""" + + assert repr(c) == exp + + c = Categorical([1, 2, 3, 4, 5] * 10, ordered=True) + exp = """[1, 2, 3, 4, 5, ..., 1, 2, 3, 4, 5] +Length: 50 +Categories (5, int64): [1 < 2 < 3 < 4 < 5]""" + + assert repr(c) == exp + + c = Categorical(np.arange(20, dtype=np.int64), ordered=True) + exp = """[0, 1, 2, 3, 4, ..., 15, 16, 17, 18, 19] +Length: 20 +Categories (20, int64): [0 < 1 < 2 < 3 ... 16 < 17 < 18 < 19]""" + + assert repr(c) == exp + + def test_categorical_repr_datetime(self): + idx = date_range("2011-01-01 09:00", freq="h", periods=5) + c = Categorical(idx) + + exp = ( + "[2011-01-01 09:00:00, 2011-01-01 10:00:00, 2011-01-01 11:00:00, " + "2011-01-01 12:00:00, 2011-01-01 13:00:00]\n" + "Categories (5, datetime64[ns]): [2011-01-01 09:00:00, " + "2011-01-01 10:00:00, 2011-01-01 11:00:00,\n" + " 2011-01-01 12:00:00, " + "2011-01-01 13:00:00]" + "" + ) + assert repr(c) == exp + + c = Categorical(idx.append(idx), categories=idx) + exp = ( + "[2011-01-01 09:00:00, 2011-01-01 10:00:00, 2011-01-01 11:00:00, " + "2011-01-01 12:00:00, 2011-01-01 13:00:00, 2011-01-01 09:00:00, " + "2011-01-01 10:00:00, 2011-01-01 11:00:00, 2011-01-01 12:00:00, " + "2011-01-01 13:00:00]\n" + "Categories (5, datetime64[ns]): [2011-01-01 09:00:00, " + "2011-01-01 10:00:00, 2011-01-01 11:00:00,\n" + " 2011-01-01 12:00:00, " + "2011-01-01 13:00:00]" + ) + + assert repr(c) == exp + + idx = date_range("2011-01-01 09:00", freq="h", periods=5, tz="US/Eastern") + c = Categorical(idx) + exp = ( + "[2011-01-01 09:00:00-05:00, 2011-01-01 10:00:00-05:00, " + "2011-01-01 11:00:00-05:00, 2011-01-01 12:00:00-05:00, " + "2011-01-01 13:00:00-05:00]\n" + "Categories (5, datetime64[ns, US/Eastern]): " + "[2011-01-01 09:00:00-05:00, 2011-01-01 10:00:00-05:00,\n" + " " + "2011-01-01 11:00:00-05:00, 2011-01-01 12:00:00-05:00,\n" + " " + "2011-01-01 13:00:00-05:00]" + ) + + assert repr(c) == exp + + c = Categorical(idx.append(idx), categories=idx) + exp = ( + "[2011-01-01 09:00:00-05:00, 2011-01-01 10:00:00-05:00, " + "2011-01-01 11:00:00-05:00, 2011-01-01 12:00:00-05:00, " + "2011-01-01 13:00:00-05:00, 2011-01-01 09:00:00-05:00, " + "2011-01-01 10:00:00-05:00, 2011-01-01 11:00:00-05:00, " + "2011-01-01 12:00:00-05:00, 2011-01-01 13:00:00-05:00]\n" + "Categories (5, datetime64[ns, US/Eastern]): " + "[2011-01-01 09:00:00-05:00, 2011-01-01 10:00:00-05:00,\n" + " " + "2011-01-01 11:00:00-05:00, 2011-01-01 12:00:00-05:00,\n" + " " + "2011-01-01 13:00:00-05:00]" + ) + + assert repr(c) == exp + + def test_categorical_repr_datetime_ordered(self): + idx = date_range("2011-01-01 09:00", freq="h", periods=5) + c = Categorical(idx, ordered=True) + exp = """[2011-01-01 09:00:00, 2011-01-01 10:00:00, 2011-01-01 11:00:00, 2011-01-01 12:00:00, 2011-01-01 13:00:00] +Categories (5, datetime64[ns]): [2011-01-01 09:00:00 < 2011-01-01 10:00:00 < 2011-01-01 11:00:00 < + 2011-01-01 12:00:00 < 2011-01-01 13:00:00]""" # noqa: E501 + + assert repr(c) == exp + + c = Categorical(idx.append(idx), categories=idx, ordered=True) + exp = """[2011-01-01 09:00:00, 2011-01-01 10:00:00, 2011-01-01 11:00:00, 2011-01-01 12:00:00, 2011-01-01 13:00:00, 2011-01-01 09:00:00, 2011-01-01 10:00:00, 2011-01-01 11:00:00, 2011-01-01 12:00:00, 2011-01-01 13:00:00] +Categories (5, datetime64[ns]): [2011-01-01 09:00:00 < 2011-01-01 10:00:00 < 2011-01-01 11:00:00 < + 2011-01-01 12:00:00 < 2011-01-01 13:00:00]""" # noqa: E501 + + assert repr(c) == exp + + idx = date_range("2011-01-01 09:00", freq="h", periods=5, tz="US/Eastern") + c = Categorical(idx, ordered=True) + exp = """[2011-01-01 09:00:00-05:00, 2011-01-01 10:00:00-05:00, 2011-01-01 11:00:00-05:00, 2011-01-01 12:00:00-05:00, 2011-01-01 13:00:00-05:00] +Categories (5, datetime64[ns, US/Eastern]): [2011-01-01 09:00:00-05:00 < 2011-01-01 10:00:00-05:00 < + 2011-01-01 11:00:00-05:00 < 2011-01-01 12:00:00-05:00 < + 2011-01-01 13:00:00-05:00]""" # noqa: E501 + + assert repr(c) == exp + + c = Categorical(idx.append(idx), categories=idx, ordered=True) + exp = """[2011-01-01 09:00:00-05:00, 2011-01-01 10:00:00-05:00, 2011-01-01 11:00:00-05:00, 2011-01-01 12:00:00-05:00, 2011-01-01 13:00:00-05:00, 2011-01-01 09:00:00-05:00, 2011-01-01 10:00:00-05:00, 2011-01-01 11:00:00-05:00, 2011-01-01 12:00:00-05:00, 2011-01-01 13:00:00-05:00] +Categories (5, datetime64[ns, US/Eastern]): [2011-01-01 09:00:00-05:00 < 2011-01-01 10:00:00-05:00 < + 2011-01-01 11:00:00-05:00 < 2011-01-01 12:00:00-05:00 < + 2011-01-01 13:00:00-05:00]""" # noqa: E501 + + assert repr(c) == exp + + def test_categorical_repr_int_with_nan(self): + c = Categorical([1, 2, np.nan]) + c_exp = """[1, 2, NaN]\nCategories (2, int64): [1, 2]""" + assert repr(c) == c_exp + + s = Series([1, 2, np.nan], dtype="object").astype("category") + s_exp = """0 1\n1 2\n2 NaN +dtype: category +Categories (2, int64): [1, 2]""" + assert repr(s) == s_exp + + def test_categorical_repr_period(self): + idx = period_range("2011-01-01 09:00", freq="h", periods=5) + c = Categorical(idx) + exp = """[2011-01-01 09:00, 2011-01-01 10:00, 2011-01-01 11:00, 2011-01-01 12:00, 2011-01-01 13:00] +Categories (5, period[h]): [2011-01-01 09:00, 2011-01-01 10:00, 2011-01-01 11:00, 2011-01-01 12:00, + 2011-01-01 13:00]""" # noqa: E501 + + assert repr(c) == exp + + c = Categorical(idx.append(idx), categories=idx) + exp = """[2011-01-01 09:00, 2011-01-01 10:00, 2011-01-01 11:00, 2011-01-01 12:00, 2011-01-01 13:00, 2011-01-01 09:00, 2011-01-01 10:00, 2011-01-01 11:00, 2011-01-01 12:00, 2011-01-01 13:00] +Categories (5, period[h]): [2011-01-01 09:00, 2011-01-01 10:00, 2011-01-01 11:00, 2011-01-01 12:00, + 2011-01-01 13:00]""" # noqa: E501 + + assert repr(c) == exp + + idx = period_range("2011-01", freq="M", periods=5) + c = Categorical(idx) + exp = """[2011-01, 2011-02, 2011-03, 2011-04, 2011-05] +Categories (5, period[M]): [2011-01, 2011-02, 2011-03, 2011-04, 2011-05]""" + + assert repr(c) == exp + + c = Categorical(idx.append(idx), categories=idx) + exp = """[2011-01, 2011-02, 2011-03, 2011-04, 2011-05, 2011-01, 2011-02, 2011-03, 2011-04, 2011-05] +Categories (5, period[M]): [2011-01, 2011-02, 2011-03, 2011-04, 2011-05]""" # noqa: E501 + + assert repr(c) == exp + + def test_categorical_repr_period_ordered(self): + idx = period_range("2011-01-01 09:00", freq="h", periods=5) + c = Categorical(idx, ordered=True) + exp = """[2011-01-01 09:00, 2011-01-01 10:00, 2011-01-01 11:00, 2011-01-01 12:00, 2011-01-01 13:00] +Categories (5, period[h]): [2011-01-01 09:00 < 2011-01-01 10:00 < 2011-01-01 11:00 < 2011-01-01 12:00 < + 2011-01-01 13:00]""" # noqa: E501 + + assert repr(c) == exp + + c = Categorical(idx.append(idx), categories=idx, ordered=True) + exp = """[2011-01-01 09:00, 2011-01-01 10:00, 2011-01-01 11:00, 2011-01-01 12:00, 2011-01-01 13:00, 2011-01-01 09:00, 2011-01-01 10:00, 2011-01-01 11:00, 2011-01-01 12:00, 2011-01-01 13:00] +Categories (5, period[h]): [2011-01-01 09:00 < 2011-01-01 10:00 < 2011-01-01 11:00 < 2011-01-01 12:00 < + 2011-01-01 13:00]""" # noqa: E501 + + assert repr(c) == exp + + idx = period_range("2011-01", freq="M", periods=5) + c = Categorical(idx, ordered=True) + exp = """[2011-01, 2011-02, 2011-03, 2011-04, 2011-05] +Categories (5, period[M]): [2011-01 < 2011-02 < 2011-03 < 2011-04 < 2011-05]""" + + assert repr(c) == exp + + c = Categorical(idx.append(idx), categories=idx, ordered=True) + exp = """[2011-01, 2011-02, 2011-03, 2011-04, 2011-05, 2011-01, 2011-02, 2011-03, 2011-04, 2011-05] +Categories (5, period[M]): [2011-01 < 2011-02 < 2011-03 < 2011-04 < 2011-05]""" # noqa: E501 + + assert repr(c) == exp + + def test_categorical_repr_timedelta(self): + idx = timedelta_range("1 days", periods=5) + c = Categorical(idx) + exp = """[1 days, 2 days, 3 days, 4 days, 5 days] +Categories (5, timedelta64[ns]): [1 days, 2 days, 3 days, 4 days, 5 days]""" + + assert repr(c) == exp + + c = Categorical(idx.append(idx), categories=idx) + exp = """[1 days, 2 days, 3 days, 4 days, 5 days, 1 days, 2 days, 3 days, 4 days, 5 days] +Categories (5, timedelta64[ns]): [1 days, 2 days, 3 days, 4 days, 5 days]""" # noqa: E501 + + assert repr(c) == exp + + idx = timedelta_range("1 hours", periods=20) + c = Categorical(idx) + exp = """[0 days 01:00:00, 1 days 01:00:00, 2 days 01:00:00, 3 days 01:00:00, 4 days 01:00:00, ..., 15 days 01:00:00, 16 days 01:00:00, 17 days 01:00:00, 18 days 01:00:00, 19 days 01:00:00] +Length: 20 +Categories (20, timedelta64[ns]): [0 days 01:00:00, 1 days 01:00:00, 2 days 01:00:00, + 3 days 01:00:00, ..., 16 days 01:00:00, 17 days 01:00:00, + 18 days 01:00:00, 19 days 01:00:00]""" # noqa: E501 + + assert repr(c) == exp + + c = Categorical(idx.append(idx), categories=idx) + exp = """[0 days 01:00:00, 1 days 01:00:00, 2 days 01:00:00, 3 days 01:00:00, 4 days 01:00:00, ..., 15 days 01:00:00, 16 days 01:00:00, 17 days 01:00:00, 18 days 01:00:00, 19 days 01:00:00] +Length: 40 +Categories (20, timedelta64[ns]): [0 days 01:00:00, 1 days 01:00:00, 2 days 01:00:00, + 3 days 01:00:00, ..., 16 days 01:00:00, 17 days 01:00:00, + 18 days 01:00:00, 19 days 01:00:00]""" # noqa: E501 + + assert repr(c) == exp + + def test_categorical_repr_timedelta_ordered(self): + idx = timedelta_range("1 days", periods=5) + c = Categorical(idx, ordered=True) + exp = """[1 days, 2 days, 3 days, 4 days, 5 days] +Categories (5, timedelta64[ns]): [1 days < 2 days < 3 days < 4 days < 5 days]""" + + assert repr(c) == exp + + c = Categorical(idx.append(idx), categories=idx, ordered=True) + exp = """[1 days, 2 days, 3 days, 4 days, 5 days, 1 days, 2 days, 3 days, 4 days, 5 days] +Categories (5, timedelta64[ns]): [1 days < 2 days < 3 days < 4 days < 5 days]""" # noqa: E501 + + assert repr(c) == exp + + idx = timedelta_range("1 hours", periods=20) + c = Categorical(idx, ordered=True) + exp = """[0 days 01:00:00, 1 days 01:00:00, 2 days 01:00:00, 3 days 01:00:00, 4 days 01:00:00, ..., 15 days 01:00:00, 16 days 01:00:00, 17 days 01:00:00, 18 days 01:00:00, 19 days 01:00:00] +Length: 20 +Categories (20, timedelta64[ns]): [0 days 01:00:00 < 1 days 01:00:00 < 2 days 01:00:00 < + 3 days 01:00:00 ... 16 days 01:00:00 < 17 days 01:00:00 < + 18 days 01:00:00 < 19 days 01:00:00]""" # noqa: E501 + + assert repr(c) == exp + + c = Categorical(idx.append(idx), categories=idx, ordered=True) + exp = """[0 days 01:00:00, 1 days 01:00:00, 2 days 01:00:00, 3 days 01:00:00, 4 days 01:00:00, ..., 15 days 01:00:00, 16 days 01:00:00, 17 days 01:00:00, 18 days 01:00:00, 19 days 01:00:00] +Length: 40 +Categories (20, timedelta64[ns]): [0 days 01:00:00 < 1 days 01:00:00 < 2 days 01:00:00 < + 3 days 01:00:00 ... 16 days 01:00:00 < 17 days 01:00:00 < + 18 days 01:00:00 < 19 days 01:00:00]""" # noqa: E501 + + assert repr(c) == exp + + def test_categorical_index_repr(self): + idx = CategoricalIndex(Categorical([1, 2, 3])) + exp = """CategoricalIndex([1, 2, 3], categories=[1, 2, 3], ordered=False, dtype='category')""" # noqa: E501 + assert repr(idx) == exp + + i = CategoricalIndex(Categorical(np.arange(10, dtype=np.int64))) + exp = """CategoricalIndex([0, 1, 2, 3, 4, 5, 6, 7, 8, 9], categories=[0, 1, 2, 3, ..., 6, 7, 8, 9], ordered=False, dtype='category')""" # noqa: E501 + assert repr(i) == exp + + def test_categorical_index_repr_ordered(self): + i = CategoricalIndex(Categorical([1, 2, 3], ordered=True)) + exp = """CategoricalIndex([1, 2, 3], categories=[1, 2, 3], ordered=True, dtype='category')""" # noqa: E501 + assert repr(i) == exp + + i = CategoricalIndex(Categorical(np.arange(10, dtype=np.int64), ordered=True)) + exp = """CategoricalIndex([0, 1, 2, 3, 4, 5, 6, 7, 8, 9], categories=[0, 1, 2, 3, ..., 6, 7, 8, 9], ordered=True, dtype='category')""" # noqa: E501 + assert repr(i) == exp + + def test_categorical_index_repr_datetime(self): + idx = date_range("2011-01-01 09:00", freq="h", periods=5) + i = CategoricalIndex(Categorical(idx)) + exp = """CategoricalIndex(['2011-01-01 09:00:00', '2011-01-01 10:00:00', + '2011-01-01 11:00:00', '2011-01-01 12:00:00', + '2011-01-01 13:00:00'], + categories=[2011-01-01 09:00:00, 2011-01-01 10:00:00, 2011-01-01 11:00:00, 2011-01-01 12:00:00, 2011-01-01 13:00:00], ordered=False, dtype='category')""" # noqa: E501 + + assert repr(i) == exp + + idx = date_range("2011-01-01 09:00", freq="h", periods=5, tz="US/Eastern") + i = CategoricalIndex(Categorical(idx)) + exp = """CategoricalIndex(['2011-01-01 09:00:00-05:00', '2011-01-01 10:00:00-05:00', + '2011-01-01 11:00:00-05:00', '2011-01-01 12:00:00-05:00', + '2011-01-01 13:00:00-05:00'], + categories=[2011-01-01 09:00:00-05:00, 2011-01-01 10:00:00-05:00, 2011-01-01 11:00:00-05:00, 2011-01-01 12:00:00-05:00, 2011-01-01 13:00:00-05:00], ordered=False, dtype='category')""" # noqa: E501 + + assert repr(i) == exp + + def test_categorical_index_repr_datetime_ordered(self): + idx = date_range("2011-01-01 09:00", freq="h", periods=5) + i = CategoricalIndex(Categorical(idx, ordered=True)) + exp = """CategoricalIndex(['2011-01-01 09:00:00', '2011-01-01 10:00:00', + '2011-01-01 11:00:00', '2011-01-01 12:00:00', + '2011-01-01 13:00:00'], + categories=[2011-01-01 09:00:00, 2011-01-01 10:00:00, 2011-01-01 11:00:00, 2011-01-01 12:00:00, 2011-01-01 13:00:00], ordered=True, dtype='category')""" # noqa: E501 + + assert repr(i) == exp + + idx = date_range("2011-01-01 09:00", freq="h", periods=5, tz="US/Eastern") + i = CategoricalIndex(Categorical(idx, ordered=True)) + exp = """CategoricalIndex(['2011-01-01 09:00:00-05:00', '2011-01-01 10:00:00-05:00', + '2011-01-01 11:00:00-05:00', '2011-01-01 12:00:00-05:00', + '2011-01-01 13:00:00-05:00'], + categories=[2011-01-01 09:00:00-05:00, 2011-01-01 10:00:00-05:00, 2011-01-01 11:00:00-05:00, 2011-01-01 12:00:00-05:00, 2011-01-01 13:00:00-05:00], ordered=True, dtype='category')""" # noqa: E501 + + assert repr(i) == exp + + i = CategoricalIndex(Categorical(idx.append(idx), ordered=True)) + exp = """CategoricalIndex(['2011-01-01 09:00:00-05:00', '2011-01-01 10:00:00-05:00', + '2011-01-01 11:00:00-05:00', '2011-01-01 12:00:00-05:00', + '2011-01-01 13:00:00-05:00', '2011-01-01 09:00:00-05:00', + '2011-01-01 10:00:00-05:00', '2011-01-01 11:00:00-05:00', + '2011-01-01 12:00:00-05:00', '2011-01-01 13:00:00-05:00'], + categories=[2011-01-01 09:00:00-05:00, 2011-01-01 10:00:00-05:00, 2011-01-01 11:00:00-05:00, 2011-01-01 12:00:00-05:00, 2011-01-01 13:00:00-05:00], ordered=True, dtype='category')""" # noqa: E501 + + assert repr(i) == exp + + def test_categorical_index_repr_period(self): + # test all length + idx = period_range("2011-01-01 09:00", freq="h", periods=1) + i = CategoricalIndex(Categorical(idx)) + exp = """CategoricalIndex(['2011-01-01 09:00'], categories=[2011-01-01 09:00], ordered=False, dtype='category')""" # noqa: E501 + assert repr(i) == exp + + idx = period_range("2011-01-01 09:00", freq="h", periods=2) + i = CategoricalIndex(Categorical(idx)) + exp = """CategoricalIndex(['2011-01-01 09:00', '2011-01-01 10:00'], categories=[2011-01-01 09:00, 2011-01-01 10:00], ordered=False, dtype='category')""" # noqa: E501 + assert repr(i) == exp + + idx = period_range("2011-01-01 09:00", freq="h", periods=3) + i = CategoricalIndex(Categorical(idx)) + exp = """CategoricalIndex(['2011-01-01 09:00', '2011-01-01 10:00', '2011-01-01 11:00'], categories=[2011-01-01 09:00, 2011-01-01 10:00, 2011-01-01 11:00], ordered=False, dtype='category')""" # noqa: E501 + assert repr(i) == exp + + idx = period_range("2011-01-01 09:00", freq="h", periods=5) + i = CategoricalIndex(Categorical(idx)) + exp = """CategoricalIndex(['2011-01-01 09:00', '2011-01-01 10:00', '2011-01-01 11:00', + '2011-01-01 12:00', '2011-01-01 13:00'], + categories=[2011-01-01 09:00, 2011-01-01 10:00, 2011-01-01 11:00, 2011-01-01 12:00, 2011-01-01 13:00], ordered=False, dtype='category')""" # noqa: E501 + + assert repr(i) == exp + + i = CategoricalIndex(Categorical(idx.append(idx))) + exp = """CategoricalIndex(['2011-01-01 09:00', '2011-01-01 10:00', '2011-01-01 11:00', + '2011-01-01 12:00', '2011-01-01 13:00', '2011-01-01 09:00', + '2011-01-01 10:00', '2011-01-01 11:00', '2011-01-01 12:00', + '2011-01-01 13:00'], + categories=[2011-01-01 09:00, 2011-01-01 10:00, 2011-01-01 11:00, 2011-01-01 12:00, 2011-01-01 13:00], ordered=False, dtype='category')""" # noqa: E501 + + assert repr(i) == exp + + idx = period_range("2011-01", freq="M", periods=5) + i = CategoricalIndex(Categorical(idx)) + exp = """CategoricalIndex(['2011-01', '2011-02', '2011-03', '2011-04', '2011-05'], categories=[2011-01, 2011-02, 2011-03, 2011-04, 2011-05], ordered=False, dtype='category')""" # noqa: E501 + assert repr(i) == exp + + def test_categorical_index_repr_period_ordered(self): + idx = period_range("2011-01-01 09:00", freq="h", periods=5) + i = CategoricalIndex(Categorical(idx, ordered=True)) + exp = """CategoricalIndex(['2011-01-01 09:00', '2011-01-01 10:00', '2011-01-01 11:00', + '2011-01-01 12:00', '2011-01-01 13:00'], + categories=[2011-01-01 09:00, 2011-01-01 10:00, 2011-01-01 11:00, 2011-01-01 12:00, 2011-01-01 13:00], ordered=True, dtype='category')""" # noqa: E501 + + assert repr(i) == exp + + idx = period_range("2011-01", freq="M", periods=5) + i = CategoricalIndex(Categorical(idx, ordered=True)) + exp = """CategoricalIndex(['2011-01', '2011-02', '2011-03', '2011-04', '2011-05'], categories=[2011-01, 2011-02, 2011-03, 2011-04, 2011-05], ordered=True, dtype='category')""" # noqa: E501 + assert repr(i) == exp + + def test_categorical_index_repr_timedelta(self): + idx = timedelta_range("1 days", periods=5) + i = CategoricalIndex(Categorical(idx)) + exp = """CategoricalIndex(['1 days', '2 days', '3 days', '4 days', '5 days'], categories=[1 days, 2 days, 3 days, 4 days, 5 days], ordered=False, dtype='category')""" # noqa: E501 + assert repr(i) == exp + + idx = timedelta_range("1 hours", periods=10) + i = CategoricalIndex(Categorical(idx)) + exp = """CategoricalIndex(['0 days 01:00:00', '1 days 01:00:00', '2 days 01:00:00', + '3 days 01:00:00', '4 days 01:00:00', '5 days 01:00:00', + '6 days 01:00:00', '7 days 01:00:00', '8 days 01:00:00', + '9 days 01:00:00'], + categories=[0 days 01:00:00, 1 days 01:00:00, 2 days 01:00:00, 3 days 01:00:00, ..., 6 days 01:00:00, 7 days 01:00:00, 8 days 01:00:00, 9 days 01:00:00], ordered=False, dtype='category')""" # noqa: E501 + + assert repr(i) == exp + + def test_categorical_index_repr_timedelta_ordered(self): + idx = timedelta_range("1 days", periods=5) + i = CategoricalIndex(Categorical(idx, ordered=True)) + exp = """CategoricalIndex(['1 days', '2 days', '3 days', '4 days', '5 days'], categories=[1 days, 2 days, 3 days, 4 days, 5 days], ordered=True, dtype='category')""" # noqa: E501 + assert repr(i) == exp + + idx = timedelta_range("1 hours", periods=10) + i = CategoricalIndex(Categorical(idx, ordered=True)) + exp = """CategoricalIndex(['0 days 01:00:00', '1 days 01:00:00', '2 days 01:00:00', + '3 days 01:00:00', '4 days 01:00:00', '5 days 01:00:00', + '6 days 01:00:00', '7 days 01:00:00', '8 days 01:00:00', + '9 days 01:00:00'], + categories=[0 days 01:00:00, 1 days 01:00:00, 2 days 01:00:00, 3 days 01:00:00, ..., 6 days 01:00:00, 7 days 01:00:00, 8 days 01:00:00, 9 days 01:00:00], ordered=True, dtype='category')""" # noqa: E501 + + assert repr(i) == exp + + def test_categorical_str_repr(self): + # GH 33676 + result = repr(Categorical([1, "2", 3, 4])) + expected = "[1, '2', 3, 4]\nCategories (4, object): [1, 3, 4, '2']" + assert result == expected diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_sorting.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_sorting.py new file mode 100644 index 0000000000000000000000000000000000000000..ae527065b3fb970263609881d217f5c6d2761231 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_sorting.py @@ -0,0 +1,128 @@ +import numpy as np +import pytest + +from pandas import ( + Categorical, + Index, +) +import pandas._testing as tm + + +class TestCategoricalSort: + def test_argsort(self): + c = Categorical([5, 3, 1, 4, 2], ordered=True) + + expected = np.array([2, 4, 1, 3, 0]) + tm.assert_numpy_array_equal( + c.argsort(ascending=True), expected, check_dtype=False + ) + + expected = expected[::-1] + tm.assert_numpy_array_equal( + c.argsort(ascending=False), expected, check_dtype=False + ) + + def test_numpy_argsort(self): + c = Categorical([5, 3, 1, 4, 2], ordered=True) + + expected = np.array([2, 4, 1, 3, 0]) + tm.assert_numpy_array_equal(np.argsort(c), expected, check_dtype=False) + + tm.assert_numpy_array_equal( + np.argsort(c, kind="mergesort"), expected, check_dtype=False + ) + + msg = "the 'axis' parameter is not supported" + with pytest.raises(ValueError, match=msg): + np.argsort(c, axis=0) + + msg = "the 'order' parameter is not supported" + with pytest.raises(ValueError, match=msg): + np.argsort(c, order="C") + + def test_sort_values(self): + # unordered cats are sortable + cat = Categorical(["a", "b", "b", "a"], ordered=False) + cat.sort_values() + + cat = Categorical(["a", "c", "b", "d"], ordered=True) + + # sort_values + res = cat.sort_values() + exp = np.array(["a", "b", "c", "d"], dtype=object) + tm.assert_numpy_array_equal(res.__array__(), exp) + tm.assert_index_equal(res.categories, cat.categories) + + cat = Categorical( + ["a", "c", "b", "d"], categories=["a", "b", "c", "d"], ordered=True + ) + res = cat.sort_values() + exp = np.array(["a", "b", "c", "d"], dtype=object) + tm.assert_numpy_array_equal(res.__array__(), exp) + tm.assert_index_equal(res.categories, cat.categories) + + res = cat.sort_values(ascending=False) + exp = np.array(["d", "c", "b", "a"], dtype=object) + tm.assert_numpy_array_equal(res.__array__(), exp) + tm.assert_index_equal(res.categories, cat.categories) + + # sort (inplace order) + cat1 = cat.copy() + orig_codes = cat1._codes + cat1.sort_values(inplace=True) + assert cat1._codes is orig_codes + exp = np.array(["a", "b", "c", "d"], dtype=object) + tm.assert_numpy_array_equal(cat1.__array__(), exp) + tm.assert_index_equal(res.categories, cat.categories) + + # reverse + cat = Categorical(["a", "c", "c", "b", "d"], ordered=True) + res = cat.sort_values(ascending=False) + exp_val = np.array(["d", "c", "c", "b", "a"], dtype=object) + exp_categories = Index(["a", "b", "c", "d"]) + tm.assert_numpy_array_equal(res.__array__(), exp_val) + tm.assert_index_equal(res.categories, exp_categories) + + def test_sort_values_na_position(self): + # see gh-12882 + cat = Categorical([5, 2, np.nan, 2, np.nan], ordered=True) + exp_categories = Index([2, 5]) + + exp = np.array([2.0, 2.0, 5.0, np.nan, np.nan]) + res = cat.sort_values() # default arguments + tm.assert_numpy_array_equal(res.__array__(), exp) + tm.assert_index_equal(res.categories, exp_categories) + + exp = np.array([np.nan, np.nan, 2.0, 2.0, 5.0]) + res = cat.sort_values(ascending=True, na_position="first") + tm.assert_numpy_array_equal(res.__array__(), exp) + tm.assert_index_equal(res.categories, exp_categories) + + exp = np.array([np.nan, np.nan, 5.0, 2.0, 2.0]) + res = cat.sort_values(ascending=False, na_position="first") + tm.assert_numpy_array_equal(res.__array__(), exp) + tm.assert_index_equal(res.categories, exp_categories) + + exp = np.array([2.0, 2.0, 5.0, np.nan, np.nan]) + res = cat.sort_values(ascending=True, na_position="last") + tm.assert_numpy_array_equal(res.__array__(), exp) + tm.assert_index_equal(res.categories, exp_categories) + + exp = np.array([5.0, 2.0, 2.0, np.nan, np.nan]) + res = cat.sort_values(ascending=False, na_position="last") + tm.assert_numpy_array_equal(res.__array__(), exp) + tm.assert_index_equal(res.categories, exp_categories) + + cat = Categorical(["a", "c", "b", "d", np.nan], ordered=True) + res = cat.sort_values(ascending=False, na_position="last") + exp_val = np.array(["d", "c", "b", "a", np.nan], dtype=object) + exp_categories = Index(["a", "b", "c", "d"]) + tm.assert_numpy_array_equal(res.__array__(), exp_val) + tm.assert_index_equal(res.categories, exp_categories) + + cat = Categorical(["a", "c", "b", "d", np.nan], ordered=True) + res = cat.sort_values(ascending=False, na_position="first") + exp_val = np.array([np.nan, "d", "c", "b", "a"], dtype=object) + exp_categories = Index(["a", "b", "c", "d"]) + tm.assert_numpy_array_equal(res.__array__(), exp_val) + tm.assert_index_equal(res.categories, exp_categories) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_subclass.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_subclass.py new file mode 100644 index 0000000000000000000000000000000000000000..5b0c0a44e655d5dd943f95415336204aa12f0b67 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_subclass.py @@ -0,0 +1,26 @@ +from pandas import Categorical +import pandas._testing as tm + + +class SubclassedCategorical(Categorical): + pass + + +class TestCategoricalSubclassing: + def test_constructor(self): + sc = SubclassedCategorical(["a", "b", "c"]) + assert isinstance(sc, SubclassedCategorical) + tm.assert_categorical_equal(sc, Categorical(["a", "b", "c"])) + + def test_from_codes(self): + sc = SubclassedCategorical.from_codes([1, 0, 2], ["a", "b", "c"]) + assert isinstance(sc, SubclassedCategorical) + exp = Categorical.from_codes([1, 0, 2], ["a", "b", "c"]) + tm.assert_categorical_equal(sc, exp) + + def test_map(self): + sc = SubclassedCategorical(["a", "b", "c"]) + res = sc.map(lambda x: x.upper(), na_action=None) + assert isinstance(res, SubclassedCategorical) + exp = Categorical(["A", "B", "C"]) + tm.assert_categorical_equal(res, exp) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_take.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_take.py new file mode 100644 index 0000000000000000000000000000000000000000..373f1b30a13c2daff23e14a3e0640e7a716cceb3 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_take.py @@ -0,0 +1,89 @@ +import numpy as np +import pytest + +from pandas import Categorical +import pandas._testing as tm + + +@pytest.fixture(params=[True, False]) +def allow_fill(request): + """Boolean 'allow_fill' parameter for Categorical.take""" + return request.param + + +class TestTake: + # https://github.com/pandas-dev/pandas/issues/20664 + + def test_take_default_allow_fill(self): + cat = Categorical(["a", "b"]) + with tm.assert_produces_warning(None): + result = cat.take([0, -1]) + + assert result.equals(cat) + + def test_take_positive_no_warning(self): + cat = Categorical(["a", "b"]) + with tm.assert_produces_warning(None): + cat.take([0, 0]) + + def test_take_bounds(self, allow_fill): + # https://github.com/pandas-dev/pandas/issues/20664 + cat = Categorical(["a", "b", "a"]) + if allow_fill: + msg = "indices are out-of-bounds" + else: + msg = "index 4 is out of bounds for( axis 0 with)? size 3" + with pytest.raises(IndexError, match=msg): + cat.take([4, 5], allow_fill=allow_fill) + + def test_take_empty(self, allow_fill): + # https://github.com/pandas-dev/pandas/issues/20664 + cat = Categorical([], categories=["a", "b"]) + if allow_fill: + msg = "indices are out-of-bounds" + else: + msg = "cannot do a non-empty take from an empty axes" + with pytest.raises(IndexError, match=msg): + cat.take([0], allow_fill=allow_fill) + + def test_positional_take(self, ordered): + cat = Categorical(["a", "a", "b", "b"], categories=["b", "a"], ordered=ordered) + result = cat.take([0, 1, 2], allow_fill=False) + expected = Categorical( + ["a", "a", "b"], categories=cat.categories, ordered=ordered + ) + tm.assert_categorical_equal(result, expected) + + def test_positional_take_unobserved(self, ordered): + cat = Categorical(["a", "b"], categories=["a", "b", "c"], ordered=ordered) + result = cat.take([1, 0], allow_fill=False) + expected = Categorical(["b", "a"], categories=cat.categories, ordered=ordered) + tm.assert_categorical_equal(result, expected) + + def test_take_allow_fill(self): + # https://github.com/pandas-dev/pandas/issues/23296 + cat = Categorical(["a", "a", "b"]) + result = cat.take([0, -1, -1], allow_fill=True) + expected = Categorical(["a", np.nan, np.nan], categories=["a", "b"]) + tm.assert_categorical_equal(result, expected) + + def test_take_fill_with_negative_one(self): + # -1 was a category + cat = Categorical([-1, 0, 1]) + result = cat.take([0, -1, 1], allow_fill=True, fill_value=-1) + expected = Categorical([-1, -1, 0], categories=[-1, 0, 1]) + tm.assert_categorical_equal(result, expected) + + def test_take_fill_value(self): + # https://github.com/pandas-dev/pandas/issues/23296 + cat = Categorical(["a", "b", "c"]) + result = cat.take([0, 1, -1], fill_value="a", allow_fill=True) + expected = Categorical(["a", "b", "a"], categories=["a", "b", "c"]) + tm.assert_categorical_equal(result, expected) + + def test_take_fill_value_new_raises(self): + # https://github.com/pandas-dev/pandas/issues/23296 + cat = Categorical(["a", "b", "c"]) + xpr = r"Cannot setitem on a Categorical with a new category \(d\)" + with pytest.raises(TypeError, match=xpr): + cat.take([0, 1, -1], fill_value="d", allow_fill=True) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_warnings.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_warnings.py new file mode 100644 index 0000000000000000000000000000000000000000..68c59706a6c3bf93908108c337b51c8da187cbb4 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/categorical/test_warnings.py @@ -0,0 +1,19 @@ +import pytest + +import pandas._testing as tm + + +class TestCategoricalWarnings: + def test_tab_complete_warning(self, ip): + # https://github.com/pandas-dev/pandas/issues/16409 + pytest.importorskip("IPython", minversion="6.0.0") + from IPython.core.completer import provisionalcompleter + + code = "import pandas as pd; c = pd.Categorical([])" + ip.run_cell(code) + + # GH 31324 newer jedi version raises Deprecation warning; + # appears resolved 2021-02-02 + with tm.assert_produces_warning(None, raise_on_extra_warnings=False): + with provisionalcompleter("ignore"): + list(ip.Completer.completions("c.", 1)) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/datetimes/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/datetimes/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/datetimes/test_constructors.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/datetimes/test_constructors.py new file mode 100644 index 0000000000000000000000000000000000000000..3652b5fec46bbe7a519dd2c3a196ac87bd74784f --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/datetimes/test_constructors.py @@ -0,0 +1,284 @@ +import numpy as np +import pytest + +from pandas._libs import iNaT + +from pandas.core.dtypes.dtypes import DatetimeTZDtype + +import pandas as pd +import pandas._testing as tm +from pandas.core.arrays import DatetimeArray + + +class TestDatetimeArrayConstructor: + def test_from_sequence_invalid_type(self): + mi = pd.MultiIndex.from_product([np.arange(5), np.arange(5)]) + with pytest.raises(TypeError, match="Cannot create a DatetimeArray"): + DatetimeArray._from_sequence(mi, dtype="M8[ns]") + + def test_only_1dim_accepted(self): + arr = np.array([0, 1, 2, 3], dtype="M8[h]").astype("M8[ns]") + + depr_msg = "DatetimeArray.__init__ is deprecated" + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + with pytest.raises(ValueError, match="Only 1-dimensional"): + # 3-dim, we allow 2D to sneak in for ops purposes GH#29853 + DatetimeArray(arr.reshape(2, 2, 1)) + + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + with pytest.raises(ValueError, match="Only 1-dimensional"): + # 0-dim + DatetimeArray(arr[[0]].squeeze()) + + def test_freq_validation(self): + # GH#24623 check that invalid instances cannot be created with the + # public constructor + arr = np.arange(5, dtype=np.int64) * 3600 * 10**9 + + msg = ( + "Inferred frequency h from passed values does not " + "conform to passed frequency W-SUN" + ) + depr_msg = "DatetimeArray.__init__ is deprecated" + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + with pytest.raises(ValueError, match=msg): + DatetimeArray(arr, freq="W") + + @pytest.mark.parametrize( + "meth", + [ + DatetimeArray._from_sequence, + pd.to_datetime, + pd.DatetimeIndex, + ], + ) + def test_mixing_naive_tzaware_raises(self, meth): + # GH#24569 + arr = np.array([pd.Timestamp("2000"), pd.Timestamp("2000", tz="CET")]) + + msg = ( + "Cannot mix tz-aware with tz-naive values|" + "Tz-aware datetime.datetime cannot be converted " + "to datetime64 unless utc=True" + ) + + for obj in [arr, arr[::-1]]: + # check that we raise regardless of whether naive is found + # before aware or vice-versa + with pytest.raises(ValueError, match=msg): + meth(obj) + + def test_from_pandas_array(self): + arr = pd.array(np.arange(5, dtype=np.int64)) * 3600 * 10**9 + + result = DatetimeArray._from_sequence(arr, dtype="M8[ns]")._with_freq("infer") + + expected = pd.date_range("1970-01-01", periods=5, freq="h")._data + tm.assert_datetime_array_equal(result, expected) + + def test_mismatched_timezone_raises(self): + depr_msg = "DatetimeArray.__init__ is deprecated" + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + arr = DatetimeArray( + np.array(["2000-01-01T06:00:00"], dtype="M8[ns]"), + dtype=DatetimeTZDtype(tz="US/Central"), + ) + dtype = DatetimeTZDtype(tz="US/Eastern") + msg = r"dtype=datetime64\[ns.*\] does not match data dtype datetime64\[ns.*\]" + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + with pytest.raises(TypeError, match=msg): + DatetimeArray(arr, dtype=dtype) + + # also with mismatched tzawareness + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + with pytest.raises(TypeError, match=msg): + DatetimeArray(arr, dtype=np.dtype("M8[ns]")) + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + with pytest.raises(TypeError, match=msg): + DatetimeArray(arr.tz_localize(None), dtype=arr.dtype) + + def test_non_array_raises(self): + depr_msg = "DatetimeArray.__init__ is deprecated" + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + with pytest.raises(ValueError, match="list"): + DatetimeArray([1, 2, 3]) + + def test_bool_dtype_raises(self): + arr = np.array([1, 2, 3], dtype="bool") + + depr_msg = "DatetimeArray.__init__ is deprecated" + msg = "Unexpected value for 'dtype': 'bool'. Must be" + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + with pytest.raises(ValueError, match=msg): + DatetimeArray(arr) + + msg = r"dtype bool cannot be converted to datetime64\[ns\]" + with pytest.raises(TypeError, match=msg): + DatetimeArray._from_sequence(arr, dtype="M8[ns]") + + with pytest.raises(TypeError, match=msg): + pd.DatetimeIndex(arr) + + with pytest.raises(TypeError, match=msg): + pd.to_datetime(arr) + + def test_incorrect_dtype_raises(self): + depr_msg = "DatetimeArray.__init__ is deprecated" + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + with pytest.raises(ValueError, match="Unexpected value for 'dtype'."): + DatetimeArray(np.array([1, 2, 3], dtype="i8"), dtype="category") + + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + with pytest.raises(ValueError, match="Unexpected value for 'dtype'."): + DatetimeArray(np.array([1, 2, 3], dtype="i8"), dtype="m8[s]") + + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + with pytest.raises(ValueError, match="Unexpected value for 'dtype'."): + DatetimeArray(np.array([1, 2, 3], dtype="i8"), dtype="M8[D]") + + def test_mismatched_values_dtype_units(self): + arr = np.array([1, 2, 3], dtype="M8[s]") + dtype = np.dtype("M8[ns]") + msg = "Values resolution does not match dtype." + depr_msg = "DatetimeArray.__init__ is deprecated" + + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + with pytest.raises(ValueError, match=msg): + DatetimeArray(arr, dtype=dtype) + + dtype2 = DatetimeTZDtype(tz="UTC", unit="ns") + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + with pytest.raises(ValueError, match=msg): + DatetimeArray(arr, dtype=dtype2) + + def test_freq_infer_raises(self): + depr_msg = "DatetimeArray.__init__ is deprecated" + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + with pytest.raises(ValueError, match="Frequency inference"): + DatetimeArray(np.array([1, 2, 3], dtype="i8"), freq="infer") + + def test_copy(self): + data = np.array([1, 2, 3], dtype="M8[ns]") + arr = DatetimeArray._from_sequence(data, copy=False) + assert arr._ndarray is data + + arr = DatetimeArray._from_sequence(data, copy=True) + assert arr._ndarray is not data + + @pytest.mark.parametrize("unit", ["s", "ms", "us", "ns"]) + def test_numpy_datetime_unit(self, unit): + data = np.array([1, 2, 3], dtype=f"M8[{unit}]") + arr = DatetimeArray._from_sequence(data) + assert arr.unit == unit + assert arr[0].unit == unit + + +class TestSequenceToDT64NS: + def test_tz_dtype_mismatch_raises(self): + arr = DatetimeArray._from_sequence( + ["2000"], dtype=DatetimeTZDtype(tz="US/Central") + ) + with pytest.raises(TypeError, match="data is already tz-aware"): + DatetimeArray._from_sequence(arr, dtype=DatetimeTZDtype(tz="UTC")) + + def test_tz_dtype_matches(self): + dtype = DatetimeTZDtype(tz="US/Central") + arr = DatetimeArray._from_sequence(["2000"], dtype=dtype) + result = DatetimeArray._from_sequence(arr, dtype=dtype) + tm.assert_equal(arr, result) + + @pytest.mark.parametrize("order", ["F", "C"]) + def test_2d(self, order): + dti = pd.date_range("2016-01-01", periods=6, tz="US/Pacific") + arr = np.array(dti, dtype=object).reshape(3, 2) + if order == "F": + arr = arr.T + + res = DatetimeArray._from_sequence(arr, dtype=dti.dtype) + expected = DatetimeArray._from_sequence(arr.ravel(), dtype=dti.dtype).reshape( + arr.shape + ) + tm.assert_datetime_array_equal(res, expected) + + +# ---------------------------------------------------------------------------- +# Arrow interaction + + +EXTREME_VALUES = [0, 123456789, None, iNaT, 2**63 - 1, -(2**63) + 1] +FINE_TO_COARSE_SAFE = [123_000_000_000, None, -123_000_000_000] +COARSE_TO_FINE_SAFE = [123, None, -123] + + +@pytest.mark.parametrize( + ("pa_unit", "pd_unit", "pa_tz", "pd_tz", "data"), + [ + ("s", "s", "UTC", "UTC", EXTREME_VALUES), + ("ms", "ms", "UTC", "Europe/Berlin", EXTREME_VALUES), + ("us", "us", "US/Eastern", "UTC", EXTREME_VALUES), + ("ns", "ns", "US/Central", "Asia/Kolkata", EXTREME_VALUES), + ("ns", "s", "UTC", "UTC", FINE_TO_COARSE_SAFE), + ("us", "ms", "UTC", "Europe/Berlin", FINE_TO_COARSE_SAFE), + ("ms", "us", "US/Eastern", "UTC", COARSE_TO_FINE_SAFE), + ("s", "ns", "US/Central", "Asia/Kolkata", COARSE_TO_FINE_SAFE), + ], +) +def test_from_arrow_with_different_units_and_timezones_with( + pa_unit, pd_unit, pa_tz, pd_tz, data +): + pa = pytest.importorskip("pyarrow") + + pa_type = pa.timestamp(pa_unit, tz=pa_tz) + arr = pa.array(data, type=pa_type) + dtype = DatetimeTZDtype(unit=pd_unit, tz=pd_tz) + + result = dtype.__from_arrow__(arr) + expected = DatetimeArray._from_sequence(data, dtype=f"M8[{pa_unit}, UTC]").astype( + dtype, copy=False + ) + tm.assert_extension_array_equal(result, expected) + + result = dtype.__from_arrow__(pa.chunked_array([arr])) + tm.assert_extension_array_equal(result, expected) + + +@pytest.mark.parametrize( + ("unit", "tz"), + [ + ("s", "UTC"), + ("ms", "Europe/Berlin"), + ("us", "US/Eastern"), + ("ns", "Asia/Kolkata"), + ("ns", "UTC"), + ], +) +def test_from_arrow_from_empty(unit, tz): + pa = pytest.importorskip("pyarrow") + + data = [] + arr = pa.array(data) + dtype = DatetimeTZDtype(unit=unit, tz=tz) + + result = dtype.__from_arrow__(arr) + expected = DatetimeArray._from_sequence(np.array(data, dtype=f"datetime64[{unit}]")) + expected = expected.tz_localize(tz=tz) + tm.assert_extension_array_equal(result, expected) + + result = dtype.__from_arrow__(pa.chunked_array([arr])) + tm.assert_extension_array_equal(result, expected) + + +def test_from_arrow_from_integers(): + pa = pytest.importorskip("pyarrow") + + data = [0, 123456789, None, 2**63 - 1, iNaT, -123456789] + arr = pa.array(data) + dtype = DatetimeTZDtype(unit="ns", tz="UTC") + + result = dtype.__from_arrow__(arr) + expected = DatetimeArray._from_sequence(np.array(data, dtype="datetime64[ns]")) + expected = expected.tz_localize("UTC") + tm.assert_extension_array_equal(result, expected) + + result = dtype.__from_arrow__(pa.chunked_array([arr])) + tm.assert_extension_array_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/datetimes/test_cumulative.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/datetimes/test_cumulative.py new file mode 100644 index 0000000000000000000000000000000000000000..e9d2dfdd0048a42a3f23e41be1d45a89aae11d23 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/datetimes/test_cumulative.py @@ -0,0 +1,44 @@ +import pytest + +import pandas._testing as tm +from pandas.core.arrays import DatetimeArray + + +class TestAccumulator: + def test_accumulators_freq(self): + # GH#50297 + arr = DatetimeArray._from_sequence( + [ + "2000-01-01", + "2000-01-02", + "2000-01-03", + ], + dtype="M8[ns]", + )._with_freq("infer") + result = arr._accumulate("cummin") + expected = DatetimeArray._from_sequence(["2000-01-01"] * 3, dtype="M8[ns]") + tm.assert_datetime_array_equal(result, expected) + + result = arr._accumulate("cummax") + expected = DatetimeArray._from_sequence( + [ + "2000-01-01", + "2000-01-02", + "2000-01-03", + ], + dtype="M8[ns]", + ) + tm.assert_datetime_array_equal(result, expected) + + @pytest.mark.parametrize("func", ["cumsum", "cumprod"]) + def test_accumulators_disallowed(self, func): + # GH#50297 + arr = DatetimeArray._from_sequence( + [ + "2000-01-01", + "2000-01-02", + ], + dtype="M8[ns]", + )._with_freq("infer") + with pytest.raises(TypeError, match=f"Accumulation {func}"): + arr._accumulate(func) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/datetimes/test_reductions.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/datetimes/test_reductions.py new file mode 100644 index 0000000000000000000000000000000000000000..a941546b13a567b705f61a3a667119cd55a2f0e4 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/datetimes/test_reductions.py @@ -0,0 +1,183 @@ +import numpy as np +import pytest + +from pandas.core.dtypes.dtypes import DatetimeTZDtype + +import pandas as pd +from pandas import NaT +import pandas._testing as tm +from pandas.core.arrays import DatetimeArray + + +class TestReductions: + @pytest.fixture(params=["s", "ms", "us", "ns"]) + def unit(self, request): + return request.param + + @pytest.fixture + def arr1d(self, tz_naive_fixture): + """Fixture returning DatetimeArray with parametrized timezones""" + tz = tz_naive_fixture + dtype = DatetimeTZDtype(tz=tz) if tz is not None else np.dtype("M8[ns]") + arr = DatetimeArray._from_sequence( + [ + "2000-01-03", + "2000-01-03", + "NaT", + "2000-01-02", + "2000-01-05", + "2000-01-04", + ], + dtype=dtype, + ) + return arr + + def test_min_max(self, arr1d, unit): + arr = arr1d + arr = arr.as_unit(unit) + tz = arr.tz + + result = arr.min() + expected = pd.Timestamp("2000-01-02", tz=tz).as_unit(unit) + assert result == expected + assert result.unit == expected.unit + + result = arr.max() + expected = pd.Timestamp("2000-01-05", tz=tz).as_unit(unit) + assert result == expected + assert result.unit == expected.unit + + result = arr.min(skipna=False) + assert result is NaT + + result = arr.max(skipna=False) + assert result is NaT + + @pytest.mark.parametrize("tz", [None, "US/Central"]) + @pytest.mark.parametrize("skipna", [True, False]) + def test_min_max_empty(self, skipna, tz): + dtype = DatetimeTZDtype(tz=tz) if tz is not None else np.dtype("M8[ns]") + arr = DatetimeArray._from_sequence([], dtype=dtype) + result = arr.min(skipna=skipna) + assert result is NaT + + result = arr.max(skipna=skipna) + assert result is NaT + + @pytest.mark.parametrize("tz", [None, "US/Central"]) + @pytest.mark.parametrize("skipna", [True, False]) + def test_median_empty(self, skipna, tz): + dtype = DatetimeTZDtype(tz=tz) if tz is not None else np.dtype("M8[ns]") + arr = DatetimeArray._from_sequence([], dtype=dtype) + result = arr.median(skipna=skipna) + assert result is NaT + + arr = arr.reshape(0, 3) + result = arr.median(axis=0, skipna=skipna) + expected = type(arr)._from_sequence([NaT, NaT, NaT], dtype=arr.dtype) + tm.assert_equal(result, expected) + + result = arr.median(axis=1, skipna=skipna) + expected = type(arr)._from_sequence([], dtype=arr.dtype) + tm.assert_equal(result, expected) + + def test_median(self, arr1d): + arr = arr1d + + result = arr.median() + assert result == arr[0] + result = arr.median(skipna=False) + assert result is NaT + + result = arr.dropna().median(skipna=False) + assert result == arr[0] + + result = arr.median(axis=0) + assert result == arr[0] + + def test_median_axis(self, arr1d): + arr = arr1d + assert arr.median(axis=0) == arr.median() + assert arr.median(axis=0, skipna=False) is NaT + + msg = r"abs\(axis\) must be less than ndim" + with pytest.raises(ValueError, match=msg): + arr.median(axis=1) + + @pytest.mark.filterwarnings("ignore:All-NaN slice encountered:RuntimeWarning") + def test_median_2d(self, arr1d): + arr = arr1d.reshape(1, -1) + + # axis = None + assert arr.median() == arr1d.median() + assert arr.median(skipna=False) is NaT + + # axis = 0 + result = arr.median(axis=0) + expected = arr1d + tm.assert_equal(result, expected) + + # Since column 3 is all-NaT, we get NaT there with or without skipna + result = arr.median(axis=0, skipna=False) + expected = arr1d + tm.assert_equal(result, expected) + + # axis = 1 + result = arr.median(axis=1) + expected = type(arr)._from_sequence([arr1d.median()], dtype=arr.dtype) + tm.assert_equal(result, expected) + + result = arr.median(axis=1, skipna=False) + expected = type(arr)._from_sequence([NaT], dtype=arr.dtype) + tm.assert_equal(result, expected) + + def test_mean(self, arr1d): + arr = arr1d + + # manually verified result + expected = arr[0] + 0.4 * pd.Timedelta(days=1) + + result = arr.mean() + assert result == expected + result = arr.mean(skipna=False) + assert result is NaT + + result = arr.dropna().mean(skipna=False) + assert result == expected + + result = arr.mean(axis=0) + assert result == expected + + def test_mean_2d(self): + dti = pd.date_range("2016-01-01", periods=6, tz="US/Pacific") + dta = dti._data.reshape(3, 2) + + result = dta.mean(axis=0) + expected = dta[1] + tm.assert_datetime_array_equal(result, expected) + + result = dta.mean(axis=1) + expected = dta[:, 0] + pd.Timedelta(hours=12) + tm.assert_datetime_array_equal(result, expected) + + result = dta.mean(axis=None) + expected = dti.mean() + assert result == expected + + @pytest.mark.parametrize("skipna", [True, False]) + def test_mean_empty(self, arr1d, skipna): + arr = arr1d[:0] + + assert arr.mean(skipna=skipna) is NaT + + arr2d = arr.reshape(0, 3) + result = arr2d.mean(axis=0, skipna=skipna) + expected = DatetimeArray._from_sequence([NaT, NaT, NaT], dtype=arr.dtype) + tm.assert_datetime_array_equal(result, expected) + + result = arr2d.mean(axis=1, skipna=skipna) + expected = arr # i.e. 1D, empty + tm.assert_datetime_array_equal(result, expected) + + result = arr2d.mean(axis=None, skipna=skipna) + assert result is NaT diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/conftest.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/conftest.py new file mode 100644 index 0000000000000000000000000000000000000000..5e971c66029d5ba90ecaa5eb3437246f1548557a --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/conftest.py @@ -0,0 +1,48 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas.core.arrays.floating import ( + Float32Dtype, + Float64Dtype, +) + + +@pytest.fixture(params=[Float32Dtype, Float64Dtype]) +def dtype(request): + """Parametrized fixture returning a float 'dtype'""" + return request.param() + + +@pytest.fixture +def data(dtype): + """Fixture returning 'data' array according to parametrized float 'dtype'""" + return pd.array( + list(np.arange(0.1, 0.9, 0.1)) + + [pd.NA] + + list(np.arange(1, 9.8, 0.1)) + + [pd.NA] + + [9.9, 10.0], + dtype=dtype, + ) + + +@pytest.fixture +def data_missing(dtype): + """ + Fixture returning array with missing data according to parametrized float + 'dtype'. + """ + return pd.array([np.nan, 0.1], dtype=dtype) + + +@pytest.fixture(params=["data", "data_missing"]) +def all_data(request, data, data_missing): + """Parametrized fixture returning 'data' or 'data_missing' float arrays. + + Used to test dtype conversion with and without missing values. + """ + if request.param == "data": + return data + elif request.param == "data_missing": + return data_missing diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/test_arithmetic.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/test_arithmetic.py new file mode 100644 index 0000000000000000000000000000000000000000..009fac4c2f5ed4af079024aea35f60337f85989b --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/test_arithmetic.py @@ -0,0 +1,240 @@ +import operator + +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm +from pandas.core.arrays import FloatingArray + +# Basic test for the arithmetic array ops +# ----------------------------------------------------------------------------- + + +@pytest.mark.parametrize( + "opname, exp", + [ + ("add", [1.1, 2.2, None, None, 5.5]), + ("mul", [0.1, 0.4, None, None, 2.5]), + ("sub", [0.9, 1.8, None, None, 4.5]), + ("truediv", [10.0, 10.0, None, None, 10.0]), + ("floordiv", [9.0, 9.0, None, None, 10.0]), + ("mod", [0.1, 0.2, None, None, 0.0]), + ], + ids=["add", "mul", "sub", "div", "floordiv", "mod"], +) +def test_array_op(dtype, opname, exp): + a = pd.array([1.0, 2.0, None, 4.0, 5.0], dtype=dtype) + b = pd.array([0.1, 0.2, 0.3, None, 0.5], dtype=dtype) + + op = getattr(operator, opname) + + result = op(a, b) + expected = pd.array(exp, dtype=dtype) + tm.assert_extension_array_equal(result, expected) + + +@pytest.mark.parametrize("zero, negative", [(0, False), (0.0, False), (-0.0, True)]) +def test_divide_by_zero(dtype, zero, negative): + # TODO pending NA/NaN discussion + # https://github.com/pandas-dev/pandas/issues/32265/ + a = pd.array([0, 1, -1, None], dtype=dtype) + result = a / zero + expected = FloatingArray( + np.array([np.nan, np.inf, -np.inf, np.nan], dtype=dtype.numpy_dtype), + np.array([False, False, False, True]), + ) + if negative: + expected *= -1 + tm.assert_extension_array_equal(result, expected) + + +def test_pow_scalar(dtype): + a = pd.array([-1, 0, 1, None, 2], dtype=dtype) + result = a**0 + expected = pd.array([1, 1, 1, 1, 1], dtype=dtype) + tm.assert_extension_array_equal(result, expected) + + result = a**1 + expected = pd.array([-1, 0, 1, None, 2], dtype=dtype) + tm.assert_extension_array_equal(result, expected) + + result = a**pd.NA + expected = pd.array([None, None, 1, None, None], dtype=dtype) + tm.assert_extension_array_equal(result, expected) + + result = a**np.nan + # TODO np.nan should be converted to pd.NA / missing before operation? + expected = FloatingArray( + np.array([np.nan, np.nan, 1, np.nan, np.nan], dtype=dtype.numpy_dtype), + mask=a._mask, + ) + tm.assert_extension_array_equal(result, expected) + + # reversed + a = a[1:] # Can't raise integers to negative powers. + + result = 0**a + expected = pd.array([1, 0, None, 0], dtype=dtype) + tm.assert_extension_array_equal(result, expected) + + result = 1**a + expected = pd.array([1, 1, 1, 1], dtype=dtype) + tm.assert_extension_array_equal(result, expected) + + result = pd.NA**a + expected = pd.array([1, None, None, None], dtype=dtype) + tm.assert_extension_array_equal(result, expected) + + result = np.nan**a + expected = FloatingArray( + np.array([1, np.nan, np.nan, np.nan], dtype=dtype.numpy_dtype), mask=a._mask + ) + tm.assert_extension_array_equal(result, expected) + + +def test_pow_array(dtype): + a = pd.array([0, 0, 0, 1, 1, 1, None, None, None], dtype=dtype) + b = pd.array([0, 1, None, 0, 1, None, 0, 1, None], dtype=dtype) + result = a**b + expected = pd.array([1, 0, None, 1, 1, 1, 1, None, None], dtype=dtype) + tm.assert_extension_array_equal(result, expected) + + +def test_rpow_one_to_na(): + # https://github.com/pandas-dev/pandas/issues/22022 + # https://github.com/pandas-dev/pandas/issues/29997 + arr = pd.array([np.nan, np.nan], dtype="Float64") + result = np.array([1.0, 2.0]) ** arr + expected = pd.array([1.0, np.nan], dtype="Float64") + tm.assert_extension_array_equal(result, expected) + + +@pytest.mark.parametrize("other", [0, 0.5]) +def test_arith_zero_dim_ndarray(other): + arr = pd.array([1, None, 2], dtype="Float64") + result = arr + np.array(other) + expected = arr + other + tm.assert_equal(result, expected) + + +# Test generic characteristics / errors +# ----------------------------------------------------------------------------- + + +def test_error_invalid_values(data, all_arithmetic_operators): + op = all_arithmetic_operators + s = pd.Series(data) + ops = getattr(s, op) + + # invalid scalars + msg = "|".join( + [ + r"can only perform ops with numeric values", + r"FloatingArray cannot perform the operation mod", + "unsupported operand type", + "not all arguments converted during string formatting", + "can't multiply sequence by non-int of type 'float'", + "ufunc 'subtract' cannot use operands with types dtype", + r"can only concatenate str \(not \"float\"\) to str", + "ufunc '.*' not supported for the input types, and the inputs could not", + "ufunc '.*' did not contain a loop with signature matching types", + "Concatenation operation is not implemented for NumPy arrays", + "has no kernel", + "not implemented", + "not supported for dtype", + "Can only string multiply by an integer", + ] + ) + with pytest.raises(TypeError, match=msg): + ops("foo") + with pytest.raises(TypeError, match=msg): + ops(pd.Timestamp("20180101")) + + # invalid array-likes + with pytest.raises(TypeError, match=msg): + ops(pd.Series("foo", index=s.index)) + + msg = "|".join( + [ + "can only perform ops with numeric values", + "cannot perform .* with this index type: DatetimeArray", + "Addition/subtraction of integers and integer-arrays " + "with DatetimeArray is no longer supported. *", + "unsupported operand type", + "not all arguments converted during string formatting", + "can't multiply sequence by non-int of type 'float'", + "ufunc 'subtract' cannot use operands with types dtype", + ( + "ufunc 'add' cannot use operands with types " + rf"dtype\('{tm.ENDIAN}M8\[ns\]'\)" + ), + r"ufunc 'add' cannot use operands with types dtype\('float\d{2}'\)", + "cannot subtract DatetimeArray from ndarray", + "has no kernel", + "not implemented", + "not supported for dtype", + ] + ) + with pytest.raises(TypeError, match=msg): + ops(pd.Series(pd.date_range("20180101", periods=len(s)))) + + +# Various +# ----------------------------------------------------------------------------- + + +def test_cross_type_arithmetic(): + df = pd.DataFrame( + { + "A": pd.array([1, 2, np.nan], dtype="Float64"), + "B": pd.array([1, np.nan, 3], dtype="Float32"), + "C": np.array([1, 2, 3], dtype="float64"), + } + ) + + result = df.A + df.C + expected = pd.Series([2, 4, np.nan], dtype="Float64") + tm.assert_series_equal(result, expected) + + result = (df.A + df.C) * 3 == 12 + expected = pd.Series([False, True, None], dtype="boolean") + tm.assert_series_equal(result, expected) + + result = df.A + df.B + expected = pd.Series([2, np.nan, np.nan], dtype="Float64") + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "source, neg_target, abs_target", + [ + ([1.1, 2.2, 3.3], [-1.1, -2.2, -3.3], [1.1, 2.2, 3.3]), + ([1.1, 2.2, None], [-1.1, -2.2, None], [1.1, 2.2, None]), + ([-1.1, 0.0, 1.1], [1.1, 0.0, -1.1], [1.1, 0.0, 1.1]), + ], +) +def test_unary_float_operators(float_ea_dtype, source, neg_target, abs_target): + # GH38794 + dtype = float_ea_dtype + arr = pd.array(source, dtype=dtype) + neg_result, pos_result, abs_result = -arr, +arr, abs(arr) + neg_target = pd.array(neg_target, dtype=dtype) + abs_target = pd.array(abs_target, dtype=dtype) + + tm.assert_extension_array_equal(neg_result, neg_target) + tm.assert_extension_array_equal(pos_result, arr) + assert not tm.shares_memory(pos_result, arr) + tm.assert_extension_array_equal(abs_result, abs_target) + + +def test_bitwise(dtype): + left = pd.array([1, None, 3, 4], dtype=dtype) + right = pd.array([None, 3, 5, 4], dtype=dtype) + + with pytest.raises(TypeError, match="unsupported operand type"): + left | right + with pytest.raises(TypeError, match="unsupported operand type"): + left & right + with pytest.raises(TypeError, match="unsupported operand type"): + left ^ right diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/test_astype.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/test_astype.py new file mode 100644 index 0000000000000000000000000000000000000000..752ebe194ffcfdccf491d22320a8edcae5a8adab --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/test_astype.py @@ -0,0 +1,135 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm + + +def test_astype(): + # with missing values + arr = pd.array([0.1, 0.2, None], dtype="Float64") + + with pytest.raises(ValueError, match="cannot convert NA to integer"): + arr.astype("int64") + + with pytest.raises(ValueError, match="cannot convert float NaN to bool"): + arr.astype("bool") + + result = arr.astype("float64") + expected = np.array([0.1, 0.2, np.nan], dtype="float64") + tm.assert_numpy_array_equal(result, expected) + + # no missing values + arr = pd.array([0.0, 1.0, 0.5], dtype="Float64") + result = arr.astype("int64") + expected = np.array([0, 1, 0], dtype="int64") + tm.assert_numpy_array_equal(result, expected) + + result = arr.astype("bool") + expected = np.array([False, True, True], dtype="bool") + tm.assert_numpy_array_equal(result, expected) + + +def test_astype_to_floating_array(): + # astype to FloatingArray + arr = pd.array([0.0, 1.0, None], dtype="Float64") + + result = arr.astype("Float64") + tm.assert_extension_array_equal(result, arr) + result = arr.astype(pd.Float64Dtype()) + tm.assert_extension_array_equal(result, arr) + result = arr.astype("Float32") + expected = pd.array([0.0, 1.0, None], dtype="Float32") + tm.assert_extension_array_equal(result, expected) + + +def test_astype_to_boolean_array(): + # astype to BooleanArray + arr = pd.array([0.0, 1.0, None], dtype="Float64") + + result = arr.astype("boolean") + expected = pd.array([False, True, None], dtype="boolean") + tm.assert_extension_array_equal(result, expected) + result = arr.astype(pd.BooleanDtype()) + tm.assert_extension_array_equal(result, expected) + + +def test_astype_to_integer_array(): + # astype to IntegerArray + arr = pd.array([0.0, 1.5, None], dtype="Float64") + + result = arr.astype("Int64") + expected = pd.array([0, 1, None], dtype="Int64") + tm.assert_extension_array_equal(result, expected) + + +def test_astype_str(using_infer_string): + a = pd.array([0.1, 0.2, None], dtype="Float64") + + if using_infer_string: + expected = pd.array(["0.1", "0.2", None], dtype=pd.StringDtype(na_value=np.nan)) + + tm.assert_extension_array_equal(a.astype(str), expected) + tm.assert_extension_array_equal(a.astype("str"), expected) + else: + expected = np.array(["0.1", "0.2", ""], dtype="U32") + + tm.assert_numpy_array_equal(a.astype(str), expected) + tm.assert_numpy_array_equal(a.astype("str"), expected) + + +def test_astype_copy(): + arr = pd.array([0.1, 0.2, None], dtype="Float64") + orig = pd.array([0.1, 0.2, None], dtype="Float64") + + # copy=True -> ensure both data and mask are actual copies + result = arr.astype("Float64", copy=True) + assert result is not arr + assert not tm.shares_memory(result, arr) + result[0] = 10 + tm.assert_extension_array_equal(arr, orig) + result[0] = pd.NA + tm.assert_extension_array_equal(arr, orig) + + # copy=False + result = arr.astype("Float64", copy=False) + assert result is arr + assert np.shares_memory(result._data, arr._data) + assert np.shares_memory(result._mask, arr._mask) + result[0] = 10 + assert arr[0] == 10 + result[0] = pd.NA + assert arr[0] is pd.NA + + # astype to different dtype -> always needs a copy -> even with copy=False + # we need to ensure that also the mask is actually copied + arr = pd.array([0.1, 0.2, None], dtype="Float64") + orig = pd.array([0.1, 0.2, None], dtype="Float64") + + result = arr.astype("Float32", copy=False) + assert not tm.shares_memory(result, arr) + result[0] = 10 + tm.assert_extension_array_equal(arr, orig) + result[0] = pd.NA + tm.assert_extension_array_equal(arr, orig) + + +def test_astype_object(dtype): + arr = pd.array([1.0, pd.NA], dtype=dtype) + + result = arr.astype(object) + expected = np.array([1.0, pd.NA], dtype=object) + tm.assert_numpy_array_equal(result, expected) + # check exact element types + assert isinstance(result[0], float) + assert result[1] is pd.NA + + +def test_Float64_conversion(): + # GH#40729 + testseries = pd.Series(["1", "2", "3", "4"], dtype="object") + result = testseries.astype(pd.Float64Dtype()) + + expected = pd.Series([1.0, 2.0, 3.0, 4.0], dtype=pd.Float64Dtype()) + + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/test_comparison.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/test_comparison.py new file mode 100644 index 0000000000000000000000000000000000000000..a429649f1ce1dc10fc9610faa73a81dd94255b37 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/test_comparison.py @@ -0,0 +1,65 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm +from pandas.core.arrays import FloatingArray +from pandas.tests.arrays.masked_shared import ( + ComparisonOps, + NumericOps, +) + + +class TestComparisonOps(NumericOps, ComparisonOps): + @pytest.mark.parametrize("other", [True, False, pd.NA, -1.0, 0.0, 1]) + def test_scalar(self, other, comparison_op, dtype): + ComparisonOps.test_scalar(self, other, comparison_op, dtype) + + def test_compare_with_integerarray(self, comparison_op): + op = comparison_op + a = pd.array([0, 1, None] * 3, dtype="Int64") + b = pd.array([0] * 3 + [1] * 3 + [None] * 3, dtype="Float64") + other = b.astype("Int64") + expected = op(a, other) + result = op(a, b) + tm.assert_extension_array_equal(result, expected) + expected = op(other, a) + result = op(b, a) + tm.assert_extension_array_equal(result, expected) + + +def test_equals(): + # GH-30652 + # equals is generally tested in /tests/extension/base/methods, but this + # specifically tests that two arrays of the same class but different dtype + # do not evaluate equal + a1 = pd.array([1, 2, None], dtype="Float64") + a2 = pd.array([1, 2, None], dtype="Float32") + assert a1.equals(a2) is False + + +def test_equals_nan_vs_na(): + # GH#44382 + + mask = np.zeros(3, dtype=bool) + data = np.array([1.0, np.nan, 3.0], dtype=np.float64) + + left = FloatingArray(data, mask) + assert left.equals(left) + tm.assert_extension_array_equal(left, left) + + assert left.equals(left.copy()) + assert left.equals(FloatingArray(data.copy(), mask.copy())) + + mask2 = np.array([False, True, False], dtype=bool) + data2 = np.array([1.0, 2.0, 3.0], dtype=np.float64) + right = FloatingArray(data2, mask2) + assert right.equals(right) + tm.assert_extension_array_equal(right, right) + + assert not left.equals(right) + + # with mask[1] = True, the only difference is data[1], which should + # not matter for equals + mask[1] = True + assert left.equals(right) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/test_concat.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/test_concat.py new file mode 100644 index 0000000000000000000000000000000000000000..2174a834aa959b88d899971f83247258a94476e3 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/test_concat.py @@ -0,0 +1,20 @@ +import pytest + +import pandas as pd +import pandas._testing as tm + + +@pytest.mark.parametrize( + "to_concat_dtypes, result_dtype", + [ + (["Float64", "Float64"], "Float64"), + (["Float32", "Float64"], "Float64"), + (["Float32", "Float32"], "Float32"), + ], +) +def test_concat_series(to_concat_dtypes, result_dtype): + result = pd.concat([pd.Series([1, 2, pd.NA], dtype=t) for t in to_concat_dtypes]) + expected = pd.concat([pd.Series([1, 2, pd.NA], dtype=object)] * 2).astype( + result_dtype + ) + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/test_construction.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/test_construction.py new file mode 100644 index 0000000000000000000000000000000000000000..4007ee6b415c9b0f21f580f6240ed85ba1889781 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/test_construction.py @@ -0,0 +1,204 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm +from pandas.core.arrays import FloatingArray +from pandas.core.arrays.floating import ( + Float32Dtype, + Float64Dtype, +) + + +def test_uses_pandas_na(): + a = pd.array([1, None], dtype=Float64Dtype()) + assert a[1] is pd.NA + + +def test_floating_array_constructor(): + values = np.array([1, 2, 3, 4], dtype="float64") + mask = np.array([False, False, False, True], dtype="bool") + + result = FloatingArray(values, mask) + expected = pd.array([1, 2, 3, np.nan], dtype="Float64") + tm.assert_extension_array_equal(result, expected) + tm.assert_numpy_array_equal(result._data, values) + tm.assert_numpy_array_equal(result._mask, mask) + + msg = r".* should be .* numpy array. Use the 'pd.array' function instead" + with pytest.raises(TypeError, match=msg): + FloatingArray(values.tolist(), mask) + + with pytest.raises(TypeError, match=msg): + FloatingArray(values, mask.tolist()) + + with pytest.raises(TypeError, match=msg): + FloatingArray(values.astype(int), mask) + + msg = r"__init__\(\) missing 1 required positional argument: 'mask'" + with pytest.raises(TypeError, match=msg): + FloatingArray(values) + + +def test_floating_array_disallows_float16(): + # GH#44715 + arr = np.array([1, 2], dtype=np.float16) + mask = np.array([False, False]) + + msg = "FloatingArray does not support np.float16 dtype" + with pytest.raises(TypeError, match=msg): + FloatingArray(arr, mask) + + +def test_floating_array_disallows_Float16_dtype(request): + # GH#44715 + with pytest.raises(TypeError, match="data type 'Float16' not understood"): + pd.array([1.0, 2.0], dtype="Float16") + + +def test_floating_array_constructor_copy(): + values = np.array([1, 2, 3, 4], dtype="float64") + mask = np.array([False, False, False, True], dtype="bool") + + result = FloatingArray(values, mask) + assert result._data is values + assert result._mask is mask + + result = FloatingArray(values, mask, copy=True) + assert result._data is not values + assert result._mask is not mask + + +def test_to_array(): + result = pd.array([0.1, 0.2, 0.3, 0.4]) + expected = pd.array([0.1, 0.2, 0.3, 0.4], dtype="Float64") + tm.assert_extension_array_equal(result, expected) + + +@pytest.mark.parametrize( + "a, b", + [ + ([1, None], [1, pd.NA]), + ([None], [pd.NA]), + ([None, np.nan], [pd.NA, pd.NA]), + ([1, np.nan], [1, pd.NA]), + ([np.nan], [pd.NA]), + ], +) +def test_to_array_none_is_nan(a, b): + result = pd.array(a, dtype="Float64") + expected = pd.array(b, dtype="Float64") + tm.assert_extension_array_equal(result, expected) + + +def test_to_array_mixed_integer_float(): + result = pd.array([1, 2.0]) + expected = pd.array([1.0, 2.0], dtype="Float64") + tm.assert_extension_array_equal(result, expected) + + result = pd.array([1, None, 2.0]) + expected = pd.array([1.0, None, 2.0], dtype="Float64") + tm.assert_extension_array_equal(result, expected) + + +@pytest.mark.parametrize( + "values", + [ + ["foo", "bar"], + "foo", + 1, + 1.0, + pd.date_range("20130101", periods=2), + np.array(["foo"]), + [[1, 2], [3, 4]], + [np.nan, {"a": 1}], + # GH#44514 all-NA case used to get quietly swapped out before checking ndim + np.array([pd.NA] * 6, dtype=object).reshape(3, 2), + ], +) +def test_to_array_error(values): + # error in converting existing arrays to FloatingArray + msg = "|".join( + [ + "cannot be converted to FloatingDtype", + "values must be a 1D list-like", + "Cannot pass scalar", + r"float\(\) argument must be a string or a (real )?number, not 'dict'", + "could not convert string to float: 'foo'", + r"could not convert string to float: np\.str_\('foo'\)", + ] + ) + with pytest.raises((TypeError, ValueError), match=msg): + pd.array(values, dtype="Float64") + + +@pytest.mark.parametrize("values", [["1", "2", None], ["1.5", "2", None]]) +def test_construct_from_float_strings(values): + # see also test_to_integer_array_str + expected = pd.array([float(values[0]), 2, None], dtype="Float64") + + res = pd.array(values, dtype="Float64") + tm.assert_extension_array_equal(res, expected) + + res = FloatingArray._from_sequence(values) + tm.assert_extension_array_equal(res, expected) + + +def test_to_array_inferred_dtype(): + # if values has dtype -> respect it + result = pd.array(np.array([1, 2], dtype="float32")) + assert result.dtype == Float32Dtype() + + # if values have no dtype -> always float64 + result = pd.array([1.0, 2.0]) + assert result.dtype == Float64Dtype() + + +def test_to_array_dtype_keyword(): + result = pd.array([1, 2], dtype="Float32") + assert result.dtype == Float32Dtype() + + # if values has dtype -> override it + result = pd.array(np.array([1, 2], dtype="float32"), dtype="Float64") + assert result.dtype == Float64Dtype() + + +def test_to_array_integer(): + result = pd.array([1, 2], dtype="Float64") + expected = pd.array([1.0, 2.0], dtype="Float64") + tm.assert_extension_array_equal(result, expected) + + # for integer dtypes, the itemsize is not preserved + # TODO can we specify "floating" in general? + result = pd.array(np.array([1, 2], dtype="int32"), dtype="Float64") + assert result.dtype == Float64Dtype() + + +@pytest.mark.parametrize( + "bool_values, values, target_dtype, expected_dtype", + [ + ([False, True], [0, 1], Float64Dtype(), Float64Dtype()), + ([False, True], [0, 1], "Float64", Float64Dtype()), + ([False, True, np.nan], [0, 1, np.nan], Float64Dtype(), Float64Dtype()), + ], +) +def test_to_array_bool(bool_values, values, target_dtype, expected_dtype): + result = pd.array(bool_values, dtype=target_dtype) + assert result.dtype == expected_dtype + expected = pd.array(values, dtype=target_dtype) + tm.assert_extension_array_equal(result, expected) + + +def test_series_from_float(data): + # construct from our dtype & string dtype + dtype = data.dtype + + # from float + expected = pd.Series(data) + result = pd.Series(data.to_numpy(na_value=np.nan, dtype="float"), dtype=str(dtype)) + tm.assert_series_equal(result, expected) + + # from list + expected = pd.Series(data) + result = pd.Series(np.array(data).tolist(), dtype=str(dtype)) + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/test_contains.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/test_contains.py new file mode 100644 index 0000000000000000000000000000000000000000..956642697bf3285e5c661c43047a5f0dafa83144 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/test_contains.py @@ -0,0 +1,12 @@ +import numpy as np + +import pandas as pd + + +def test_contains_nan(): + # GH#52840 + arr = pd.array(range(5)) / 0 + + assert np.isnan(arr._data[0]) + assert not arr.isna()[0] + assert np.nan in arr diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/test_function.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/test_function.py new file mode 100644 index 0000000000000000000000000000000000000000..40fd66fd049a621138c2cda074a08a1a94967bb5 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/test_function.py @@ -0,0 +1,194 @@ +import numpy as np +import pytest + +from pandas.compat import IS64 + +import pandas as pd +import pandas._testing as tm + + +@pytest.mark.parametrize("ufunc", [np.abs, np.sign]) +# np.sign emits a warning with nans, +@pytest.mark.filterwarnings("ignore:invalid value encountered in sign:RuntimeWarning") +def test_ufuncs_single(ufunc): + a = pd.array([1, 2, -3, np.nan], dtype="Float64") + result = ufunc(a) + expected = pd.array(ufunc(a.astype(float)), dtype="Float64") + tm.assert_extension_array_equal(result, expected) + + s = pd.Series(a) + result = ufunc(s) + expected = pd.Series(expected) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("ufunc", [np.log, np.exp, np.sin, np.cos, np.sqrt]) +def test_ufuncs_single_float(ufunc): + a = pd.array([1.0, 0.2, 3.0, np.nan], dtype="Float64") + with np.errstate(invalid="ignore"): + result = ufunc(a) + expected = pd.array(ufunc(a.astype(float)), dtype="Float64") + tm.assert_extension_array_equal(result, expected) + + s = pd.Series(a) + with np.errstate(invalid="ignore"): + result = ufunc(s) + expected = pd.Series(ufunc(s.astype(float)), dtype="Float64") + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("ufunc", [np.add, np.subtract]) +def test_ufuncs_binary_float(ufunc): + # two FloatingArrays + a = pd.array([1, 0.2, -3, np.nan], dtype="Float64") + result = ufunc(a, a) + expected = pd.array(ufunc(a.astype(float), a.astype(float)), dtype="Float64") + tm.assert_extension_array_equal(result, expected) + + # FloatingArray with numpy array + arr = np.array([1, 2, 3, 4]) + result = ufunc(a, arr) + expected = pd.array(ufunc(a.astype(float), arr), dtype="Float64") + tm.assert_extension_array_equal(result, expected) + + result = ufunc(arr, a) + expected = pd.array(ufunc(arr, a.astype(float)), dtype="Float64") + tm.assert_extension_array_equal(result, expected) + + # FloatingArray with scalar + result = ufunc(a, 1) + expected = pd.array(ufunc(a.astype(float), 1), dtype="Float64") + tm.assert_extension_array_equal(result, expected) + + result = ufunc(1, a) + expected = pd.array(ufunc(1, a.astype(float)), dtype="Float64") + tm.assert_extension_array_equal(result, expected) + + +@pytest.mark.parametrize("values", [[0, 1], [0, None]]) +def test_ufunc_reduce_raises(values): + arr = pd.array(values, dtype="Float64") + + res = np.add.reduce(arr) + expected = arr.sum(skipna=False) + tm.assert_almost_equal(res, expected) + + +@pytest.mark.skipif(not IS64, reason="GH 36579: fail on 32-bit system") +@pytest.mark.parametrize( + "pandasmethname, kwargs", + [ + ("var", {"ddof": 0}), + ("var", {"ddof": 1}), + ("std", {"ddof": 0}), + ("std", {"ddof": 1}), + ("kurtosis", {}), + ("skew", {}), + ("sem", {}), + ], +) +def test_stat_method(pandasmethname, kwargs): + s = pd.Series(data=[0.1, 0.2, 0.3, 0.4, 0.5, 0.6, np.nan, np.nan], dtype="Float64") + pandasmeth = getattr(s, pandasmethname) + result = pandasmeth(**kwargs) + s2 = pd.Series(data=[0.1, 0.2, 0.3, 0.4, 0.5, 0.6], dtype="float64") + pandasmeth = getattr(s2, pandasmethname) + expected = pandasmeth(**kwargs) + assert expected == result + + +def test_value_counts_na(): + arr = pd.array([0.1, 0.2, 0.1, pd.NA], dtype="Float64") + result = arr.value_counts(dropna=False) + idx = pd.Index([0.1, 0.2, pd.NA], dtype=arr.dtype) + assert idx.dtype == arr.dtype + expected = pd.Series([2, 1, 1], index=idx, dtype="Int64", name="count") + tm.assert_series_equal(result, expected) + + result = arr.value_counts(dropna=True) + expected = pd.Series([2, 1], index=idx[:-1], dtype="Int64", name="count") + tm.assert_series_equal(result, expected) + + +def test_value_counts_empty(): + ser = pd.Series([], dtype="Float64") + result = ser.value_counts() + idx = pd.Index([], dtype="Float64") + assert idx.dtype == "Float64" + expected = pd.Series([], index=idx, dtype="Int64", name="count") + tm.assert_series_equal(result, expected) + + +def test_value_counts_with_normalize(): + ser = pd.Series([0.1, 0.2, 0.1, pd.NA], dtype="Float64") + result = ser.value_counts(normalize=True) + expected = pd.Series([2, 1], index=ser[:2], dtype="Float64", name="proportion") / 3 + assert expected.index.dtype == ser.dtype + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("skipna", [True, False]) +@pytest.mark.parametrize("min_count", [0, 4]) +def test_floating_array_sum(skipna, min_count, dtype): + arr = pd.array([1, 2, 3, None], dtype=dtype) + result = arr.sum(skipna=skipna, min_count=min_count) + if skipna and min_count == 0: + assert result == 6.0 + else: + assert result is pd.NA + + +@pytest.mark.parametrize( + "values, expected", [([1, 2, 3], 6.0), ([1, 2, 3, None], 6.0), ([None], 0.0)] +) +def test_floating_array_numpy_sum(values, expected): + arr = pd.array(values, dtype="Float64") + result = np.sum(arr) + assert result == expected + + +@pytest.mark.parametrize("op", ["sum", "min", "max", "prod"]) +def test_preserve_dtypes(op): + df = pd.DataFrame( + { + "A": ["a", "b", "b"], + "B": [1, None, 3], + "C": pd.array([0.1, None, 3.0], dtype="Float64"), + } + ) + + # op + result = getattr(df.C, op)() + assert isinstance(result, np.float64) + + # groupby + result = getattr(df.groupby("A"), op)() + + expected = pd.DataFrame( + {"B": np.array([1.0, 3.0]), "C": pd.array([0.1, 3], dtype="Float64")}, + index=pd.Index(["a", "b"], name="A"), + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("skipna", [True, False]) +@pytest.mark.parametrize("method", ["min", "max"]) +def test_floating_array_min_max(skipna, method, dtype): + arr = pd.array([0.0, 1.0, None], dtype=dtype) + func = getattr(arr, method) + result = func(skipna=skipna) + if skipna: + assert result == (0 if method == "min" else 1) + else: + assert result is pd.NA + + +@pytest.mark.parametrize("skipna", [True, False]) +@pytest.mark.parametrize("min_count", [0, 9]) +def test_floating_array_prod(skipna, min_count, dtype): + arr = pd.array([1.0, 2.0, None], dtype=dtype) + result = arr.prod(skipna=skipna, min_count=min_count) + if skipna and min_count == 0: + assert result == 2 + else: + assert result is pd.NA diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/test_repr.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/test_repr.py new file mode 100644 index 0000000000000000000000000000000000000000..ea2cdd4fab86ada36d6d5804204c4a479a3e1603 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/test_repr.py @@ -0,0 +1,47 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas.core.arrays.floating import ( + Float32Dtype, + Float64Dtype, +) + + +def test_dtypes(dtype): + # smoke tests on auto dtype construction + + np.dtype(dtype.type).kind == "f" + assert dtype.name is not None + + +@pytest.mark.parametrize( + "dtype, expected", + [(Float32Dtype(), "Float32Dtype()"), (Float64Dtype(), "Float64Dtype()")], +) +def test_repr_dtype(dtype, expected): + assert repr(dtype) == expected + + +def test_repr_array(): + result = repr(pd.array([1.0, None, 3.0])) + expected = "\n[1.0, , 3.0]\nLength: 3, dtype: Float64" + assert result == expected + + +def test_repr_array_long(): + data = pd.array([1.0, 2.0, None] * 1000) + expected = """ +[ 1.0, 2.0, , 1.0, 2.0, , 1.0, 2.0, , 1.0, + ... + , 1.0, 2.0, , 1.0, 2.0, , 1.0, 2.0, ] +Length: 3000, dtype: Float64""" + result = repr(data) + assert result == expected + + +def test_frame_repr(data_missing): + df = pd.DataFrame({"A": data_missing}) + result = repr(df) + expected = " A\n0 \n1 0.1" + assert result == expected diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/test_to_numpy.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/test_to_numpy.py new file mode 100644 index 0000000000000000000000000000000000000000..e954cecba417afd71059a35f7506c650eb780373 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/floating/test_to_numpy.py @@ -0,0 +1,132 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm +from pandas.core.arrays import FloatingArray + + +@pytest.mark.parametrize("box", [True, False], ids=["series", "array"]) +def test_to_numpy(box): + con = pd.Series if box else pd.array + + # default (with or without missing values) -> object dtype + arr = con([0.1, 0.2, 0.3], dtype="Float64") + result = arr.to_numpy() + expected = np.array([0.1, 0.2, 0.3], dtype="float64") + tm.assert_numpy_array_equal(result, expected) + + arr = con([0.1, 0.2, None], dtype="Float64") + result = arr.to_numpy() + expected = np.array([0.1, 0.2, np.nan], dtype="float64") + tm.assert_numpy_array_equal(result, expected) + + +@pytest.mark.parametrize("box", [True, False], ids=["series", "array"]) +def test_to_numpy_float(box): + con = pd.Series if box else pd.array + + # no missing values -> can convert to float, otherwise raises + arr = con([0.1, 0.2, 0.3], dtype="Float64") + result = arr.to_numpy(dtype="float64") + expected = np.array([0.1, 0.2, 0.3], dtype="float64") + tm.assert_numpy_array_equal(result, expected) + + arr = con([0.1, 0.2, None], dtype="Float64") + result = arr.to_numpy(dtype="float64") + expected = np.array([0.1, 0.2, np.nan], dtype="float64") + tm.assert_numpy_array_equal(result, expected) + + result = arr.to_numpy(dtype="float64", na_value=np.nan) + expected = np.array([0.1, 0.2, np.nan], dtype="float64") + tm.assert_numpy_array_equal(result, expected) + + +@pytest.mark.parametrize("box", [True, False], ids=["series", "array"]) +def test_to_numpy_int(box): + con = pd.Series if box else pd.array + + # no missing values -> can convert to int, otherwise raises + arr = con([1.0, 2.0, 3.0], dtype="Float64") + result = arr.to_numpy(dtype="int64") + expected = np.array([1, 2, 3], dtype="int64") + tm.assert_numpy_array_equal(result, expected) + + arr = con([1.0, 2.0, None], dtype="Float64") + with pytest.raises(ValueError, match="cannot convert to 'int64'-dtype"): + result = arr.to_numpy(dtype="int64") + + # automatic casting (floors the values) + arr = con([0.1, 0.9, 1.1], dtype="Float64") + result = arr.to_numpy(dtype="int64") + expected = np.array([0, 0, 1], dtype="int64") + tm.assert_numpy_array_equal(result, expected) + + +@pytest.mark.parametrize("box", [True, False], ids=["series", "array"]) +def test_to_numpy_na_value(box): + con = pd.Series if box else pd.array + + arr = con([0.0, 1.0, None], dtype="Float64") + result = arr.to_numpy(dtype=object, na_value=None) + expected = np.array([0.0, 1.0, None], dtype="object") + tm.assert_numpy_array_equal(result, expected) + + result = arr.to_numpy(dtype=bool, na_value=False) + expected = np.array([False, True, False], dtype="bool") + tm.assert_numpy_array_equal(result, expected) + + result = arr.to_numpy(dtype="int64", na_value=-99) + expected = np.array([0, 1, -99], dtype="int64") + tm.assert_numpy_array_equal(result, expected) + + +def test_to_numpy_na_value_with_nan(): + # array with both NaN and NA -> only fill NA with `na_value` + arr = FloatingArray(np.array([0.0, np.nan, 0.0]), np.array([False, False, True])) + result = arr.to_numpy(dtype="float64", na_value=-1) + expected = np.array([0.0, np.nan, -1.0], dtype="float64") + tm.assert_numpy_array_equal(result, expected) + + +@pytest.mark.parametrize("dtype", ["float64", "float32", "int32", "int64", "bool"]) +@pytest.mark.parametrize("box", [True, False], ids=["series", "array"]) +def test_to_numpy_dtype(box, dtype): + con = pd.Series if box else pd.array + arr = con([0.0, 1.0], dtype="Float64") + + result = arr.to_numpy(dtype=dtype) + expected = np.array([0, 1], dtype=dtype) + tm.assert_numpy_array_equal(result, expected) + + +@pytest.mark.parametrize("dtype", ["int32", "int64", "bool"]) +@pytest.mark.parametrize("box", [True, False], ids=["series", "array"]) +def test_to_numpy_na_raises(box, dtype): + con = pd.Series if box else pd.array + arr = con([0.0, 1.0, None], dtype="Float64") + with pytest.raises(ValueError, match=dtype): + arr.to_numpy(dtype=dtype) + + +@pytest.mark.parametrize("box", [True, False], ids=["series", "array"]) +def test_to_numpy_string(box, dtype): + con = pd.Series if box else pd.array + arr = con([0.0, 1.0, None], dtype="Float64") + + result = arr.to_numpy(dtype="str") + expected = np.array([0.0, 1.0, pd.NA], dtype=f"{tm.ENDIAN}U32") + tm.assert_numpy_array_equal(result, expected) + + +def test_to_numpy_copy(): + # to_numpy can be zero-copy if no missing values + arr = pd.array([0.1, 0.2, 0.3], dtype="Float64") + result = arr.to_numpy(dtype="float64") + result[0] = 10 + tm.assert_extension_array_equal(arr, pd.array([10, 0.2, 0.3], dtype="Float64")) + + arr = pd.array([0.1, 0.2, 0.3], dtype="Float64") + result = arr.to_numpy(dtype="float64", copy=True) + result[0] = 10 + tm.assert_extension_array_equal(arr, pd.array([0.1, 0.2, 0.3], dtype="Float64")) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/conftest.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/conftest.py new file mode 100644 index 0000000000000000000000000000000000000000..f73400dfe689e91c4c2b457c4be1a0a41380fd6a --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/conftest.py @@ -0,0 +1,68 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas.core.arrays.integer import ( + Int8Dtype, + Int16Dtype, + Int32Dtype, + Int64Dtype, + UInt8Dtype, + UInt16Dtype, + UInt32Dtype, + UInt64Dtype, +) + + +@pytest.fixture( + params=[ + Int8Dtype, + Int16Dtype, + Int32Dtype, + Int64Dtype, + UInt8Dtype, + UInt16Dtype, + UInt32Dtype, + UInt64Dtype, + ] +) +def dtype(request): + """Parametrized fixture returning integer 'dtype'""" + return request.param() + + +@pytest.fixture +def data(dtype): + """ + Fixture returning 'data' array with valid and missing values according to + parametrized integer 'dtype'. + + Used to test dtype conversion with and without missing values. + """ + return pd.array( + list(range(8)) + [np.nan] + list(range(10, 98)) + [np.nan] + [99, 100], + dtype=dtype, + ) + + +@pytest.fixture +def data_missing(dtype): + """ + Fixture returning array with exactly one NaN and one valid integer, + according to parametrized integer 'dtype'. + + Used to test dtype conversion with and without missing values. + """ + return pd.array([np.nan, 1], dtype=dtype) + + +@pytest.fixture(params=["data", "data_missing"]) +def all_data(request, data, data_missing): + """Parametrized fixture returning 'data' or 'data_missing' integer arrays. + + Used to test dtype conversion with and without missing values. + """ + if request.param == "data": + return data + elif request.param == "data_missing": + return data_missing diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/test_arithmetic.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/test_arithmetic.py new file mode 100644 index 0000000000000000000000000000000000000000..9fbea2022c87b36a44acdab9e42ac36f0018ae06 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/test_arithmetic.py @@ -0,0 +1,345 @@ +import operator + +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm +from pandas.core import ops +from pandas.core.arrays import FloatingArray + +# Basic test for the arithmetic array ops +# ----------------------------------------------------------------------------- + + +@pytest.mark.parametrize( + "opname, exp", + [("add", [1, 3, None, None, 9]), ("mul", [0, 2, None, None, 20])], + ids=["add", "mul"], +) +def test_add_mul(dtype, opname, exp): + a = pd.array([0, 1, None, 3, 4], dtype=dtype) + b = pd.array([1, 2, 3, None, 5], dtype=dtype) + + # array / array + expected = pd.array(exp, dtype=dtype) + + op = getattr(operator, opname) + result = op(a, b) + tm.assert_extension_array_equal(result, expected) + + op = getattr(ops, "r" + opname) + result = op(a, b) + tm.assert_extension_array_equal(result, expected) + + +def test_sub(dtype): + a = pd.array([1, 2, 3, None, 5], dtype=dtype) + b = pd.array([0, 1, None, 3, 4], dtype=dtype) + + result = a - b + expected = pd.array([1, 1, None, None, 1], dtype=dtype) + tm.assert_extension_array_equal(result, expected) + + +def test_div(dtype): + a = pd.array([1, 2, 3, None, 5], dtype=dtype) + b = pd.array([0, 1, None, 3, 4], dtype=dtype) + + result = a / b + expected = pd.array([np.inf, 2, None, None, 1.25], dtype="Float64") + tm.assert_extension_array_equal(result, expected) + + +@pytest.mark.parametrize("zero, negative", [(0, False), (0.0, False), (-0.0, True)]) +def test_divide_by_zero(zero, negative): + # https://github.com/pandas-dev/pandas/issues/27398, GH#22793 + a = pd.array([0, 1, -1, None], dtype="Int64") + result = a / zero + expected = FloatingArray( + np.array([np.nan, np.inf, -np.inf, 1], dtype="float64"), + np.array([False, False, False, True]), + ) + if negative: + expected *= -1 + tm.assert_extension_array_equal(result, expected) + + +def test_floordiv(dtype): + a = pd.array([1, 2, 3, None, 5], dtype=dtype) + b = pd.array([0, 1, None, 3, 4], dtype=dtype) + + result = a // b + # Series op sets 1//0 to np.inf, which IntegerArray does not do (yet) + expected = pd.array([0, 2, None, None, 1], dtype=dtype) + tm.assert_extension_array_equal(result, expected) + + +def test_floordiv_by_int_zero_no_mask(any_int_ea_dtype): + # GH 48223: Aligns with non-masked floordiv + # but differs from numpy + # https://github.com/pandas-dev/pandas/issues/30188#issuecomment-564452740 + ser = pd.Series([0, 1], dtype=any_int_ea_dtype) + result = 1 // ser + expected = pd.Series([np.inf, 1.0], dtype="Float64") + tm.assert_series_equal(result, expected) + + ser_non_nullable = ser.astype(ser.dtype.numpy_dtype) + result = 1 // ser_non_nullable + expected = expected.astype(np.float64) + tm.assert_series_equal(result, expected) + + +def test_mod(dtype): + a = pd.array([1, 2, 3, None, 5], dtype=dtype) + b = pd.array([0, 1, None, 3, 4], dtype=dtype) + + result = a % b + expected = pd.array([0, 0, None, None, 1], dtype=dtype) + tm.assert_extension_array_equal(result, expected) + + +def test_pow_scalar(): + a = pd.array([-1, 0, 1, None, 2], dtype="Int64") + result = a**0 + expected = pd.array([1, 1, 1, 1, 1], dtype="Int64") + tm.assert_extension_array_equal(result, expected) + + result = a**1 + expected = pd.array([-1, 0, 1, None, 2], dtype="Int64") + tm.assert_extension_array_equal(result, expected) + + result = a**pd.NA + expected = pd.array([None, None, 1, None, None], dtype="Int64") + tm.assert_extension_array_equal(result, expected) + + result = a**np.nan + expected = FloatingArray( + np.array([np.nan, np.nan, 1, np.nan, np.nan], dtype="float64"), + np.array([False, False, False, True, False]), + ) + tm.assert_extension_array_equal(result, expected) + + # reversed + a = a[1:] # Can't raise integers to negative powers. + + result = 0**a + expected = pd.array([1, 0, None, 0], dtype="Int64") + tm.assert_extension_array_equal(result, expected) + + result = 1**a + expected = pd.array([1, 1, 1, 1], dtype="Int64") + tm.assert_extension_array_equal(result, expected) + + result = pd.NA**a + expected = pd.array([1, None, None, None], dtype="Int64") + tm.assert_extension_array_equal(result, expected) + + result = np.nan**a + expected = FloatingArray( + np.array([1, np.nan, np.nan, np.nan], dtype="float64"), + np.array([False, False, True, False]), + ) + tm.assert_extension_array_equal(result, expected) + + +def test_pow_array(): + a = pd.array([0, 0, 0, 1, 1, 1, None, None, None]) + b = pd.array([0, 1, None, 0, 1, None, 0, 1, None]) + result = a**b + expected = pd.array([1, 0, None, 1, 1, 1, 1, None, None]) + tm.assert_extension_array_equal(result, expected) + + +def test_rpow_one_to_na(): + # https://github.com/pandas-dev/pandas/issues/22022 + # https://github.com/pandas-dev/pandas/issues/29997 + arr = pd.array([np.nan, np.nan], dtype="Int64") + result = np.array([1.0, 2.0]) ** arr + expected = pd.array([1.0, np.nan], dtype="Float64") + tm.assert_extension_array_equal(result, expected) + + +@pytest.mark.parametrize("other", [0, 0.5]) +def test_numpy_zero_dim_ndarray(other): + arr = pd.array([1, None, 2]) + result = arr + np.array(other) + expected = arr + other + tm.assert_equal(result, expected) + + +# Test generic characteristics / errors +# ----------------------------------------------------------------------------- + + +def test_error_invalid_values(data, all_arithmetic_operators): + op = all_arithmetic_operators + s = pd.Series(data) + ops = getattr(s, op) + + # invalid scalars + with tm.external_error_raised(TypeError): + ops("foo") + with tm.external_error_raised(TypeError): + ops(pd.Timestamp("20180101")) + + # invalid array-likes + str_ser = pd.Series("foo", index=s.index) + # with pytest.raises(TypeError, match=msg): + if all_arithmetic_operators in [ + "__mul__", + "__rmul__", + ]: # (data[~data.isna()] >= 0).all(): + res = ops(str_ser) + expected = pd.Series(["foo" * x for x in data], index=s.index) + expected = expected.fillna(np.nan) + # TODO: doing this fillna to keep tests passing as we make + # assert_almost_equal stricter, but the expected with pd.NA seems + # more-correct than np.nan here. + tm.assert_series_equal(res, expected) + else: + with tm.external_error_raised(TypeError): + ops(str_ser) + + with tm.external_error_raised(TypeError): + ops(pd.Series(pd.date_range("20180101", periods=len(s)))) + + +# Various +# ----------------------------------------------------------------------------- + + +# TODO test unsigned overflow + + +def test_arith_coerce_scalar(data, all_arithmetic_operators): + op = tm.get_op_from_name(all_arithmetic_operators) + s = pd.Series(data) + other = 0.01 + + result = op(s, other) + expected = op(s.astype(float), other) + expected = expected.astype("Float64") + + # rmod results in NaN that wasn't NA in original nullable Series -> unmask it + if all_arithmetic_operators == "__rmod__": + mask = (s == 0).fillna(False).to_numpy(bool) + expected.array._mask[mask] = False + + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("other", [1.0, np.array(1.0)]) +def test_arithmetic_conversion(all_arithmetic_operators, other): + # if we have a float operand we should have a float result + # if that is equal to an integer + op = tm.get_op_from_name(all_arithmetic_operators) + + s = pd.Series([1, 2, 3], dtype="Int64") + result = op(s, other) + assert result.dtype == "Float64" + + +def test_cross_type_arithmetic(): + df = pd.DataFrame( + { + "A": pd.Series([1, 2, np.nan], dtype="Int64"), + "B": pd.Series([1, np.nan, 3], dtype="UInt8"), + "C": [1, 2, 3], + } + ) + + result = df.A + df.C + expected = pd.Series([2, 4, np.nan], dtype="Int64") + tm.assert_series_equal(result, expected) + + result = (df.A + df.C) * 3 == 12 + expected = pd.Series([False, True, None], dtype="boolean") + tm.assert_series_equal(result, expected) + + result = df.A + df.B + expected = pd.Series([2, np.nan, np.nan], dtype="Int64") + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("op", ["mean"]) +def test_reduce_to_float(op): + # some reduce ops always return float, even if the result + # is a rounded number + df = pd.DataFrame( + { + "A": ["a", "b", "b"], + "B": [1, None, 3], + "C": pd.array([1, None, 3], dtype="Int64"), + } + ) + + # op + result = getattr(df.C, op)() + assert isinstance(result, float) + + # groupby + result = getattr(df.groupby("A"), op)() + + expected = pd.DataFrame( + {"B": np.array([1.0, 3.0]), "C": pd.array([1, 3], dtype="Float64")}, + index=pd.Index(["a", "b"], name="A"), + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "source, neg_target, abs_target", + [ + ([1, 2, 3], [-1, -2, -3], [1, 2, 3]), + ([1, 2, None], [-1, -2, None], [1, 2, None]), + ([-1, 0, 1], [1, 0, -1], [1, 0, 1]), + ], +) +def test_unary_int_operators(any_signed_int_ea_dtype, source, neg_target, abs_target): + dtype = any_signed_int_ea_dtype + arr = pd.array(source, dtype=dtype) + neg_result, pos_result, abs_result = -arr, +arr, abs(arr) + neg_target = pd.array(neg_target, dtype=dtype) + abs_target = pd.array(abs_target, dtype=dtype) + + tm.assert_extension_array_equal(neg_result, neg_target) + tm.assert_extension_array_equal(pos_result, arr) + assert not tm.shares_memory(pos_result, arr) + tm.assert_extension_array_equal(abs_result, abs_target) + + +def test_values_multiplying_large_series_by_NA(): + # GH#33701 + + result = pd.NA * pd.Series(np.zeros(10001)) + expected = pd.Series([pd.NA] * 10001) + + tm.assert_series_equal(result, expected) + + +def test_bitwise(dtype): + left = pd.array([1, None, 3, 4], dtype=dtype) + right = pd.array([None, 3, 5, 4], dtype=dtype) + + result = left | right + expected = pd.array([None, None, 3 | 5, 4 | 4], dtype=dtype) + tm.assert_extension_array_equal(result, expected) + + result = left & right + expected = pd.array([None, None, 3 & 5, 4 & 4], dtype=dtype) + tm.assert_extension_array_equal(result, expected) + + result = left ^ right + expected = pd.array([None, None, 3 ^ 5, 4 ^ 4], dtype=dtype) + tm.assert_extension_array_equal(result, expected) + + # TODO: desired behavior when operating with boolean? defer? + + floats = right.astype("Float64") + with pytest.raises(TypeError, match="unsupported operand type"): + left | floats + with pytest.raises(TypeError, match="unsupported operand type"): + left & floats + with pytest.raises(TypeError, match="unsupported operand type"): + left ^ floats diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/test_comparison.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/test_comparison.py new file mode 100644 index 0000000000000000000000000000000000000000..568b0b087bf1db9610960dba12ea2e0bab8f1729 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/test_comparison.py @@ -0,0 +1,39 @@ +import pytest + +import pandas as pd +import pandas._testing as tm +from pandas.tests.arrays.masked_shared import ( + ComparisonOps, + NumericOps, +) + + +class TestComparisonOps(NumericOps, ComparisonOps): + @pytest.mark.parametrize("other", [True, False, pd.NA, -1, 0, 1]) + def test_scalar(self, other, comparison_op, dtype): + ComparisonOps.test_scalar(self, other, comparison_op, dtype) + + def test_compare_to_int(self, dtype, comparison_op): + # GH 28930 + op_name = f"__{comparison_op.__name__}__" + s1 = pd.Series([1, None, 3], dtype=dtype) + s2 = pd.Series([1, None, 3], dtype="float") + + method = getattr(s1, op_name) + result = method(2) + + method = getattr(s2, op_name) + expected = method(2).astype("boolean") + expected[s2.isna()] = pd.NA + + tm.assert_series_equal(result, expected) + + +def test_equals(): + # GH-30652 + # equals is generally tested in /tests/extension/base/methods, but this + # specifically tests that two arrays of the same class but different dtype + # do not evaluate equal + a1 = pd.array([1, 2, None], dtype="Int64") + a2 = pd.array([1, 2, None], dtype="Int32") + assert a1.equals(a2) is False diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/test_concat.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/test_concat.py new file mode 100644 index 0000000000000000000000000000000000000000..feba574da548fd597c25103f67821145bccec9ed --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/test_concat.py @@ -0,0 +1,69 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm + + +@pytest.mark.parametrize( + "to_concat_dtypes, result_dtype", + [ + (["Int64", "Int64"], "Int64"), + (["UInt64", "UInt64"], "UInt64"), + (["Int8", "Int8"], "Int8"), + (["Int8", "Int16"], "Int16"), + (["UInt8", "Int8"], "Int16"), + (["Int32", "UInt32"], "Int64"), + (["Int64", "UInt64"], "Float64"), + (["Int64", "boolean"], "object"), + (["UInt8", "boolean"], "object"), + ], +) +def test_concat_series(to_concat_dtypes, result_dtype): + # we expect the same dtypes as we would get with non-masked inputs, + # just masked where available. + + result = pd.concat([pd.Series([0, 1, pd.NA], dtype=t) for t in to_concat_dtypes]) + expected = pd.concat([pd.Series([0, 1, pd.NA], dtype=object)] * 2).astype( + result_dtype + ) + tm.assert_series_equal(result, expected) + + # order doesn't matter for result + result = pd.concat( + [pd.Series([0, 1, pd.NA], dtype=t) for t in to_concat_dtypes[::-1]] + ) + expected = pd.concat([pd.Series([0, 1, pd.NA], dtype=object)] * 2).astype( + result_dtype + ) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "to_concat_dtypes, result_dtype", + [ + (["Int64", "int64"], "Int64"), + (["UInt64", "uint64"], "UInt64"), + (["Int8", "int8"], "Int8"), + (["Int8", "int16"], "Int16"), + (["UInt8", "int8"], "Int16"), + (["Int32", "uint32"], "Int64"), + (["Int64", "uint64"], "Float64"), + (["Int64", "bool"], "object"), + (["UInt8", "bool"], "object"), + ], +) +def test_concat_series_with_numpy(to_concat_dtypes, result_dtype): + # we expect the same dtypes as we would get with non-masked inputs, + # just masked where available. + + s1 = pd.Series([0, 1, pd.NA], dtype=to_concat_dtypes[0]) + s2 = pd.Series(np.array([0, 1], dtype=to_concat_dtypes[1])) + result = pd.concat([s1, s2], ignore_index=True) + expected = pd.Series([0, 1, pd.NA, 0, 1], dtype=object).astype(result_dtype) + tm.assert_series_equal(result, expected) + + # order doesn't matter for result + result = pd.concat([s2, s1], ignore_index=True) + expected = pd.Series([0, 1, 0, 1, pd.NA], dtype=object).astype(result_dtype) + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/test_construction.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/test_construction.py new file mode 100644 index 0000000000000000000000000000000000000000..64fe40e53a9d287b6240a908b7ed9d0cf7ec1396 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/test_construction.py @@ -0,0 +1,245 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm +from pandas.api.types import is_integer +from pandas.core.arrays import IntegerArray +from pandas.core.arrays.integer import ( + Int8Dtype, + Int32Dtype, + Int64Dtype, +) + + +@pytest.fixture(params=[pd.array, IntegerArray._from_sequence]) +def constructor(request): + """Fixture returning parametrized IntegerArray from given sequence. + + Used to test dtype conversions. + """ + return request.param + + +def test_uses_pandas_na(): + a = pd.array([1, None], dtype=Int64Dtype()) + assert a[1] is pd.NA + + +def test_from_dtype_from_float(data): + # construct from our dtype & string dtype + dtype = data.dtype + + # from float + expected = pd.Series(data) + result = pd.Series(data.to_numpy(na_value=np.nan, dtype="float"), dtype=str(dtype)) + tm.assert_series_equal(result, expected) + + # from int / list + expected = pd.Series(data) + result = pd.Series(np.array(data).tolist(), dtype=str(dtype)) + tm.assert_series_equal(result, expected) + + # from int / array + expected = pd.Series(data).dropna().reset_index(drop=True) + dropped = np.array(data.dropna()).astype(np.dtype(dtype.type)) + result = pd.Series(dropped, dtype=str(dtype)) + tm.assert_series_equal(result, expected) + + +def test_conversions(data_missing): + # astype to object series + df = pd.DataFrame({"A": data_missing}) + result = df["A"].astype("object") + expected = pd.Series(np.array([pd.NA, 1], dtype=object), name="A") + tm.assert_series_equal(result, expected) + + # convert to object ndarray + # we assert that we are exactly equal + # including type conversions of scalars + result = df["A"].astype("object").values + expected = np.array([pd.NA, 1], dtype=object) + tm.assert_numpy_array_equal(result, expected) + + for r, e in zip(result, expected): + if pd.isnull(r): + assert pd.isnull(e) + elif is_integer(r): + assert r == e + assert is_integer(e) + else: + assert r == e + assert type(r) == type(e) + + +def test_integer_array_constructor(): + values = np.array([1, 2, 3, 4], dtype="int64") + mask = np.array([False, False, False, True], dtype="bool") + + result = IntegerArray(values, mask) + expected = pd.array([1, 2, 3, np.nan], dtype="Int64") + tm.assert_extension_array_equal(result, expected) + + msg = r".* should be .* numpy array. Use the 'pd.array' function instead" + with pytest.raises(TypeError, match=msg): + IntegerArray(values.tolist(), mask) + + with pytest.raises(TypeError, match=msg): + IntegerArray(values, mask.tolist()) + + with pytest.raises(TypeError, match=msg): + IntegerArray(values.astype(float), mask) + msg = r"__init__\(\) missing 1 required positional argument: 'mask'" + with pytest.raises(TypeError, match=msg): + IntegerArray(values) + + +def test_integer_array_constructor_copy(): + values = np.array([1, 2, 3, 4], dtype="int64") + mask = np.array([False, False, False, True], dtype="bool") + + result = IntegerArray(values, mask) + assert result._data is values + assert result._mask is mask + + result = IntegerArray(values, mask, copy=True) + assert result._data is not values + assert result._mask is not mask + + +@pytest.mark.parametrize( + "a, b", + [ + ([1, None], [1, np.nan]), + ([None], [np.nan]), + ([None, np.nan], [np.nan, np.nan]), + ([np.nan, np.nan], [np.nan, np.nan]), + ], +) +def test_to_integer_array_none_is_nan(a, b): + result = pd.array(a, dtype="Int64") + expected = pd.array(b, dtype="Int64") + tm.assert_extension_array_equal(result, expected) + + +@pytest.mark.parametrize( + "values", + [ + ["foo", "bar"], + "foo", + 1, + 1.0, + pd.date_range("20130101", periods=2), + np.array(["foo"]), + [[1, 2], [3, 4]], + [np.nan, {"a": 1}], + ], +) +def test_to_integer_array_error(values): + # error in converting existing arrays to IntegerArrays + msg = "|".join( + [ + r"cannot be converted to IntegerDtype", + r"invalid literal for int\(\) with base 10:", + r"values must be a 1D list-like", + r"Cannot pass scalar", + r"int\(\) argument must be a string", + ] + ) + with pytest.raises((ValueError, TypeError), match=msg): + pd.array(values, dtype="Int64") + + with pytest.raises((ValueError, TypeError), match=msg): + IntegerArray._from_sequence(values) + + +def test_to_integer_array_inferred_dtype(constructor): + # if values has dtype -> respect it + result = constructor(np.array([1, 2], dtype="int8")) + assert result.dtype == Int8Dtype() + result = constructor(np.array([1, 2], dtype="int32")) + assert result.dtype == Int32Dtype() + + # if values have no dtype -> always int64 + result = constructor([1, 2]) + assert result.dtype == Int64Dtype() + + +def test_to_integer_array_dtype_keyword(constructor): + result = constructor([1, 2], dtype="Int8") + assert result.dtype == Int8Dtype() + + # if values has dtype -> override it + result = constructor(np.array([1, 2], dtype="int8"), dtype="Int32") + assert result.dtype == Int32Dtype() + + +def test_to_integer_array_float(): + result = IntegerArray._from_sequence([1.0, 2.0], dtype="Int64") + expected = pd.array([1, 2], dtype="Int64") + tm.assert_extension_array_equal(result, expected) + + with pytest.raises(TypeError, match="cannot safely cast non-equivalent"): + IntegerArray._from_sequence([1.5, 2.0], dtype="Int64") + + # for float dtypes, the itemsize is not preserved + result = IntegerArray._from_sequence( + np.array([1.0, 2.0], dtype="float32"), dtype="Int64" + ) + assert result.dtype == Int64Dtype() + + +def test_to_integer_array_str(): + result = IntegerArray._from_sequence(["1", "2", None], dtype="Int64") + expected = pd.array([1, 2, np.nan], dtype="Int64") + tm.assert_extension_array_equal(result, expected) + + with pytest.raises( + ValueError, match=r"invalid literal for int\(\) with base 10: .*" + ): + IntegerArray._from_sequence(["1", "2", ""], dtype="Int64") + + with pytest.raises( + ValueError, match=r"invalid literal for int\(\) with base 10: .*" + ): + IntegerArray._from_sequence(["1.5", "2.0"], dtype="Int64") + + +@pytest.mark.parametrize( + "bool_values, int_values, target_dtype, expected_dtype", + [ + ([False, True], [0, 1], Int64Dtype(), Int64Dtype()), + ([False, True], [0, 1], "Int64", Int64Dtype()), + ([False, True, np.nan], [0, 1, np.nan], Int64Dtype(), Int64Dtype()), + ], +) +def test_to_integer_array_bool( + constructor, bool_values, int_values, target_dtype, expected_dtype +): + result = constructor(bool_values, dtype=target_dtype) + assert result.dtype == expected_dtype + expected = pd.array(int_values, dtype=target_dtype) + tm.assert_extension_array_equal(result, expected) + + +@pytest.mark.parametrize( + "values, to_dtype, result_dtype", + [ + (np.array([1], dtype="int64"), None, Int64Dtype), + (np.array([1, np.nan]), None, Int64Dtype), + (np.array([1, np.nan]), "int8", Int8Dtype), + ], +) +def test_to_integer_array(values, to_dtype, result_dtype): + # convert existing arrays to IntegerArrays + result = IntegerArray._from_sequence(values, dtype=to_dtype) + assert result.dtype == result_dtype() + expected = pd.array(values, dtype=result_dtype()) + tm.assert_extension_array_equal(result, expected) + + +def test_integer_array_from_boolean(): + # GH31104 + expected = pd.array(np.array([True, False]), dtype="Int64") + result = pd.array(np.array([True, False], dtype=object), dtype="Int64") + tm.assert_extension_array_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/test_dtypes.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/test_dtypes.py new file mode 100644 index 0000000000000000000000000000000000000000..90879d8bd30633246415acccd2d4d94e7c46124c --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/test_dtypes.py @@ -0,0 +1,301 @@ +import numpy as np +import pytest + +from pandas.core.dtypes.generic import ABCIndex + +import pandas as pd +import pandas._testing as tm +from pandas.core.arrays.integer import ( + Int8Dtype, + UInt32Dtype, +) + + +def test_dtypes(dtype): + # smoke tests on auto dtype construction + + if dtype.is_signed_integer: + assert np.dtype(dtype.type).kind == "i" + else: + assert np.dtype(dtype.type).kind == "u" + assert dtype.name is not None + + +@pytest.mark.parametrize("op", ["sum", "min", "max", "prod"]) +def test_preserve_dtypes(op): + # for ops that enable (mean would actually work here + # but generally it is a float return value) + df = pd.DataFrame( + { + "A": ["a", "b", "b"], + "B": [1, None, 3], + "C": pd.array([1, None, 3], dtype="Int64"), + } + ) + + # op + result = getattr(df.C, op)() + if op in {"sum", "prod", "min", "max"}: + assert isinstance(result, np.int64) + else: + assert isinstance(result, int) + + # groupby + result = getattr(df.groupby("A"), op)() + + expected = pd.DataFrame( + {"B": np.array([1.0, 3.0]), "C": pd.array([1, 3], dtype="Int64")}, + index=pd.Index(["a", "b"], name="A"), + ) + tm.assert_frame_equal(result, expected) + + +def test_astype_nansafe(): + # see gh-22343 + arr = pd.array([np.nan, 1, 2], dtype="Int8") + msg = "cannot convert NA to integer" + + with pytest.raises(ValueError, match=msg): + arr.astype("uint32") + + +@pytest.mark.parametrize("dropna", [True, False]) +def test_construct_index(all_data, dropna): + # ensure that we do not coerce to different Index dtype or non-index + + all_data = all_data[:10] + if dropna: + other = np.array(all_data[~all_data.isna()]) + else: + other = all_data + + result = pd.Index(pd.array(other, dtype=all_data.dtype)) + expected = pd.Index(other, dtype=all_data.dtype) + assert all_data.dtype == expected.dtype # dont coerce to object + + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize("dropna", [True, False]) +def test_astype_index(all_data, dropna): + # as an int/uint index to Index + + all_data = all_data[:10] + if dropna: + other = all_data[~all_data.isna()] + else: + other = all_data + + dtype = all_data.dtype + idx = pd.Index(np.array(other)) + assert isinstance(idx, ABCIndex) + + result = idx.astype(dtype) + expected = idx.astype(object).astype(dtype) + tm.assert_index_equal(result, expected) + + +def test_astype(all_data): + all_data = all_data[:10] + + ints = all_data[~all_data.isna()] + mixed = all_data + dtype = Int8Dtype() + + # coerce to same type - ints + s = pd.Series(ints) + result = s.astype(all_data.dtype) + expected = pd.Series(ints) + tm.assert_series_equal(result, expected) + + # coerce to same other - ints + s = pd.Series(ints) + result = s.astype(dtype) + expected = pd.Series(ints, dtype=dtype) + tm.assert_series_equal(result, expected) + + # coerce to same numpy_dtype - ints + s = pd.Series(ints) + result = s.astype(all_data.dtype.numpy_dtype) + expected = pd.Series(ints._data.astype(all_data.dtype.numpy_dtype)) + tm.assert_series_equal(result, expected) + + # coerce to same type - mixed + s = pd.Series(mixed) + result = s.astype(all_data.dtype) + expected = pd.Series(mixed) + tm.assert_series_equal(result, expected) + + # coerce to same other - mixed + s = pd.Series(mixed) + result = s.astype(dtype) + expected = pd.Series(mixed, dtype=dtype) + tm.assert_series_equal(result, expected) + + # coerce to same numpy_dtype - mixed + s = pd.Series(mixed) + msg = "cannot convert NA to integer" + with pytest.raises(ValueError, match=msg): + s.astype(all_data.dtype.numpy_dtype) + + # coerce to object + s = pd.Series(mixed) + result = s.astype("object") + expected = pd.Series(np.asarray(mixed, dtype=object)) + tm.assert_series_equal(result, expected) + + +def test_astype_copy(): + arr = pd.array([1, 2, 3, None], dtype="Int64") + orig = pd.array([1, 2, 3, None], dtype="Int64") + + # copy=True -> ensure both data and mask are actual copies + result = arr.astype("Int64", copy=True) + assert result is not arr + assert not tm.shares_memory(result, arr) + result[0] = 10 + tm.assert_extension_array_equal(arr, orig) + result[0] = pd.NA + tm.assert_extension_array_equal(arr, orig) + + # copy=False + result = arr.astype("Int64", copy=False) + assert result is arr + assert np.shares_memory(result._data, arr._data) + assert np.shares_memory(result._mask, arr._mask) + result[0] = 10 + assert arr[0] == 10 + result[0] = pd.NA + assert arr[0] is pd.NA + + # astype to different dtype -> always needs a copy -> even with copy=False + # we need to ensure that also the mask is actually copied + arr = pd.array([1, 2, 3, None], dtype="Int64") + orig = pd.array([1, 2, 3, None], dtype="Int64") + + result = arr.astype("Int32", copy=False) + assert not tm.shares_memory(result, arr) + result[0] = 10 + tm.assert_extension_array_equal(arr, orig) + result[0] = pd.NA + tm.assert_extension_array_equal(arr, orig) + + +def test_astype_to_larger_numpy(): + a = pd.array([1, 2], dtype="Int32") + result = a.astype("int64") + expected = np.array([1, 2], dtype="int64") + tm.assert_numpy_array_equal(result, expected) + + a = pd.array([1, 2], dtype="UInt32") + result = a.astype("uint64") + expected = np.array([1, 2], dtype="uint64") + tm.assert_numpy_array_equal(result, expected) + + +@pytest.mark.parametrize("dtype", [Int8Dtype(), "Int8", UInt32Dtype(), "UInt32"]) +def test_astype_specific_casting(dtype): + s = pd.Series([1, 2, 3], dtype="Int64") + result = s.astype(dtype) + expected = pd.Series([1, 2, 3], dtype=dtype) + tm.assert_series_equal(result, expected) + + s = pd.Series([1, 2, 3, None], dtype="Int64") + result = s.astype(dtype) + expected = pd.Series([1, 2, 3, None], dtype=dtype) + tm.assert_series_equal(result, expected) + + +def test_astype_floating(): + arr = pd.array([1, 2, None], dtype="Int64") + result = arr.astype("Float64") + expected = pd.array([1.0, 2.0, None], dtype="Float64") + tm.assert_extension_array_equal(result, expected) + + +def test_astype_dt64(): + # GH#32435 + arr = pd.array([1, 2, 3, pd.NA]) * 10**9 + + result = arr.astype("datetime64[ns]") + + expected = np.array([1, 2, 3, "NaT"], dtype="M8[s]").astype("M8[ns]") + tm.assert_numpy_array_equal(result, expected) + + +def test_construct_cast_invalid(dtype): + msg = "cannot safely" + arr = [1.2, 2.3, 3.7] + with pytest.raises(TypeError, match=msg): + pd.array(arr, dtype=dtype) + + with pytest.raises(TypeError, match=msg): + pd.Series(arr).astype(dtype) + + arr = [1.2, 2.3, 3.7, np.nan] + with pytest.raises(TypeError, match=msg): + pd.array(arr, dtype=dtype) + + with pytest.raises(TypeError, match=msg): + pd.Series(arr).astype(dtype) + + +@pytest.mark.parametrize("in_series", [True, False]) +def test_to_numpy_na_nan(in_series): + a = pd.array([0, 1, None], dtype="Int64") + if in_series: + a = pd.Series(a) + + result = a.to_numpy(dtype="float64", na_value=np.nan) + expected = np.array([0.0, 1.0, np.nan], dtype="float64") + tm.assert_numpy_array_equal(result, expected) + + result = a.to_numpy(dtype="int64", na_value=-1) + expected = np.array([0, 1, -1], dtype="int64") + tm.assert_numpy_array_equal(result, expected) + + result = a.to_numpy(dtype="bool", na_value=False) + expected = np.array([False, True, False], dtype="bool") + tm.assert_numpy_array_equal(result, expected) + + +@pytest.mark.parametrize("in_series", [True, False]) +@pytest.mark.parametrize("dtype", ["int32", "int64", "bool"]) +def test_to_numpy_dtype(dtype, in_series): + a = pd.array([0, 1], dtype="Int64") + if in_series: + a = pd.Series(a) + + result = a.to_numpy(dtype=dtype) + expected = np.array([0, 1], dtype=dtype) + tm.assert_numpy_array_equal(result, expected) + + +@pytest.mark.parametrize("dtype", ["int64", "bool"]) +def test_to_numpy_na_raises(dtype): + a = pd.array([0, 1, None], dtype="Int64") + with pytest.raises(ValueError, match=dtype): + a.to_numpy(dtype=dtype) + + +def test_astype_str(using_infer_string): + a = pd.array([1, 2, None], dtype="Int64") + + if using_infer_string: + expected = pd.array(["1", "2", None], dtype=pd.StringDtype(na_value=np.nan)) + + tm.assert_extension_array_equal(a.astype(str), expected) + tm.assert_extension_array_equal(a.astype("str"), expected) + else: + expected = np.array(["1", "2", ""], dtype=f"{tm.ENDIAN}U21") + + tm.assert_numpy_array_equal(a.astype(str), expected) + tm.assert_numpy_array_equal(a.astype("str"), expected) + + +def test_astype_boolean(): + # https://github.com/pandas-dev/pandas/issues/31102 + a = pd.array([1, 0, -1, 2, None], dtype="Int64") + result = a.astype("boolean") + expected = pd.array([True, False, True, True, None], dtype="boolean") + tm.assert_extension_array_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/test_function.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/test_function.py new file mode 100644 index 0000000000000000000000000000000000000000..d48b636a98feb94c5eaeee9eefbf5730fe9c6f79 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/test_function.py @@ -0,0 +1,203 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm +from pandas.core.arrays import FloatingArray + + +@pytest.mark.parametrize("ufunc", [np.abs, np.sign]) +# np.sign emits a warning with nans, +@pytest.mark.filterwarnings("ignore:invalid value encountered in sign:RuntimeWarning") +def test_ufuncs_single_int(ufunc): + a = pd.array([1, 2, -3, np.nan]) + result = ufunc(a) + expected = pd.array(ufunc(a.astype(float)), dtype="Int64") + tm.assert_extension_array_equal(result, expected) + + s = pd.Series(a) + result = ufunc(s) + expected = pd.Series(pd.array(ufunc(a.astype(float)), dtype="Int64")) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("ufunc", [np.log, np.exp, np.sin, np.cos, np.sqrt]) +def test_ufuncs_single_float(ufunc): + a = pd.array([1, 2, -3, np.nan]) + with np.errstate(invalid="ignore"): + result = ufunc(a) + expected = FloatingArray(ufunc(a.astype(float)), mask=a._mask) + tm.assert_extension_array_equal(result, expected) + + s = pd.Series(a) + with np.errstate(invalid="ignore"): + result = ufunc(s) + expected = pd.Series(expected) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("ufunc", [np.add, np.subtract]) +def test_ufuncs_binary_int(ufunc): + # two IntegerArrays + a = pd.array([1, 2, -3, np.nan]) + result = ufunc(a, a) + expected = pd.array(ufunc(a.astype(float), a.astype(float)), dtype="Int64") + tm.assert_extension_array_equal(result, expected) + + # IntegerArray with numpy array + arr = np.array([1, 2, 3, 4]) + result = ufunc(a, arr) + expected = pd.array(ufunc(a.astype(float), arr), dtype="Int64") + tm.assert_extension_array_equal(result, expected) + + result = ufunc(arr, a) + expected = pd.array(ufunc(arr, a.astype(float)), dtype="Int64") + tm.assert_extension_array_equal(result, expected) + + # IntegerArray with scalar + result = ufunc(a, 1) + expected = pd.array(ufunc(a.astype(float), 1), dtype="Int64") + tm.assert_extension_array_equal(result, expected) + + result = ufunc(1, a) + expected = pd.array(ufunc(1, a.astype(float)), dtype="Int64") + tm.assert_extension_array_equal(result, expected) + + +def test_ufunc_binary_output(): + a = pd.array([1, 2, np.nan]) + result = np.modf(a) + expected = np.modf(a.to_numpy(na_value=np.nan, dtype="float")) + expected = (pd.array(expected[0]), pd.array(expected[1])) + + assert isinstance(result, tuple) + assert len(result) == 2 + + for x, y in zip(result, expected): + tm.assert_extension_array_equal(x, y) + + +@pytest.mark.parametrize("values", [[0, 1], [0, None]]) +def test_ufunc_reduce_raises(values): + arr = pd.array(values) + + res = np.add.reduce(arr) + expected = arr.sum(skipna=False) + tm.assert_almost_equal(res, expected) + + +@pytest.mark.parametrize( + "pandasmethname, kwargs", + [ + ("var", {"ddof": 0}), + ("var", {"ddof": 1}), + ("std", {"ddof": 0}), + ("std", {"ddof": 1}), + ("kurtosis", {}), + ("skew", {}), + ("sem", {}), + ], +) +def test_stat_method(pandasmethname, kwargs): + s = pd.Series(data=[1, 2, 3, 4, 5, 6, np.nan, np.nan], dtype="Int64") + pandasmeth = getattr(s, pandasmethname) + result = pandasmeth(**kwargs) + s2 = pd.Series(data=[1, 2, 3, 4, 5, 6], dtype="Int64") + pandasmeth = getattr(s2, pandasmethname) + expected = pandasmeth(**kwargs) + assert expected == result + + +def test_value_counts_na(): + arr = pd.array([1, 2, 1, pd.NA], dtype="Int64") + result = arr.value_counts(dropna=False) + ex_index = pd.Index([1, 2, pd.NA], dtype="Int64") + assert ex_index.dtype == "Int64" + expected = pd.Series([2, 1, 1], index=ex_index, dtype="Int64", name="count") + tm.assert_series_equal(result, expected) + + result = arr.value_counts(dropna=True) + expected = pd.Series([2, 1], index=arr[:2], dtype="Int64", name="count") + assert expected.index.dtype == arr.dtype + tm.assert_series_equal(result, expected) + + +def test_value_counts_empty(): + # https://github.com/pandas-dev/pandas/issues/33317 + ser = pd.Series([], dtype="Int64") + result = ser.value_counts() + idx = pd.Index([], dtype=ser.dtype) + assert idx.dtype == ser.dtype + expected = pd.Series([], index=idx, dtype="Int64", name="count") + tm.assert_series_equal(result, expected) + + +def test_value_counts_with_normalize(): + # GH 33172 + ser = pd.Series([1, 2, 1, pd.NA], dtype="Int64") + result = ser.value_counts(normalize=True) + expected = pd.Series([2, 1], index=ser[:2], dtype="Float64", name="proportion") / 3 + assert expected.index.dtype == ser.dtype + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("skipna", [True, False]) +@pytest.mark.parametrize("min_count", [0, 4]) +def test_integer_array_sum(skipna, min_count, any_int_ea_dtype): + dtype = any_int_ea_dtype + arr = pd.array([1, 2, 3, None], dtype=dtype) + result = arr.sum(skipna=skipna, min_count=min_count) + if skipna and min_count == 0: + assert result == 6 + else: + assert result is pd.NA + + +@pytest.mark.parametrize("skipna", [True, False]) +@pytest.mark.parametrize("method", ["min", "max"]) +def test_integer_array_min_max(skipna, method, any_int_ea_dtype): + dtype = any_int_ea_dtype + arr = pd.array([0, 1, None], dtype=dtype) + func = getattr(arr, method) + result = func(skipna=skipna) + if skipna: + assert result == (0 if method == "min" else 1) + else: + assert result is pd.NA + + +@pytest.mark.parametrize("skipna", [True, False]) +@pytest.mark.parametrize("min_count", [0, 9]) +def test_integer_array_prod(skipna, min_count, any_int_ea_dtype): + dtype = any_int_ea_dtype + arr = pd.array([1, 2, None], dtype=dtype) + result = arr.prod(skipna=skipna, min_count=min_count) + if skipna and min_count == 0: + assert result == 2 + else: + assert result is pd.NA + + +@pytest.mark.parametrize( + "values, expected", [([1, 2, 3], 6), ([1, 2, 3, None], 6), ([None], 0)] +) +def test_integer_array_numpy_sum(values, expected): + arr = pd.array(values, dtype="Int64") + result = np.sum(arr) + assert result == expected + + +@pytest.mark.parametrize("op", ["sum", "prod", "min", "max"]) +def test_dataframe_reductions(op): + # https://github.com/pandas-dev/pandas/pull/32867 + # ensure the integers are not cast to float during reductions + df = pd.DataFrame({"a": pd.array([1, 2], dtype="Int64")}) + result = df.max() + assert isinstance(result["a"], np.int64) + + +# TODO(jreback) - these need testing / are broken + +# shift + +# set_index (destroys type) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/test_indexing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/test_indexing.py new file mode 100644 index 0000000000000000000000000000000000000000..4b953d699108b2aed1c992cf3a33f3013b298254 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/test_indexing.py @@ -0,0 +1,19 @@ +import pandas as pd +import pandas._testing as tm + + +def test_array_setitem_nullable_boolean_mask(): + # GH 31446 + ser = pd.Series([1, 2], dtype="Int64") + result = ser.where(ser > 1) + expected = pd.Series([pd.NA, 2], dtype="Int64") + tm.assert_series_equal(result, expected) + + +def test_array_setitem(): + # GH 31446 + arr = pd.Series([1, 2], dtype="Int64").array + arr[arr > 1] = 1 + + expected = pd.array([1, 1], dtype="Int64") + tm.assert_extension_array_equal(arr, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/test_reduction.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/test_reduction.py new file mode 100644 index 0000000000000000000000000000000000000000..1c91cd25ba69ce207c6be3f6dd438a4ae4f37980 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/test_reduction.py @@ -0,0 +1,123 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + DataFrame, + Series, + array, +) +import pandas._testing as tm + + +@pytest.mark.parametrize( + "op, expected", + [ + ["sum", np.int64(3)], + ["prod", np.int64(2)], + ["min", np.int64(1)], + ["max", np.int64(2)], + ["mean", np.float64(1.5)], + ["median", np.float64(1.5)], + ["var", np.float64(0.5)], + ["std", np.float64(0.5**0.5)], + ["skew", pd.NA], + ["kurt", pd.NA], + ["any", True], + ["all", True], + ], +) +def test_series_reductions(op, expected): + ser = Series([1, 2], dtype="Int64") + result = getattr(ser, op)() + tm.assert_equal(result, expected) + + +@pytest.mark.parametrize( + "op, expected", + [ + ["sum", Series([3], index=["a"], dtype="Int64")], + ["prod", Series([2], index=["a"], dtype="Int64")], + ["min", Series([1], index=["a"], dtype="Int64")], + ["max", Series([2], index=["a"], dtype="Int64")], + ["mean", Series([1.5], index=["a"], dtype="Float64")], + ["median", Series([1.5], index=["a"], dtype="Float64")], + ["var", Series([0.5], index=["a"], dtype="Float64")], + ["std", Series([0.5**0.5], index=["a"], dtype="Float64")], + ["skew", Series([pd.NA], index=["a"], dtype="Float64")], + ["kurt", Series([pd.NA], index=["a"], dtype="Float64")], + ["any", Series([True], index=["a"], dtype="boolean")], + ["all", Series([True], index=["a"], dtype="boolean")], + ], +) +def test_dataframe_reductions(op, expected): + df = DataFrame({"a": array([1, 2], dtype="Int64")}) + result = getattr(df, op)() + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "op, expected", + [ + ["sum", array([1, 3], dtype="Int64")], + ["prod", array([1, 3], dtype="Int64")], + ["min", array([1, 3], dtype="Int64")], + ["max", array([1, 3], dtype="Int64")], + ["mean", array([1, 3], dtype="Float64")], + ["median", array([1, 3], dtype="Float64")], + ["var", array([pd.NA], dtype="Float64")], + ["std", array([pd.NA], dtype="Float64")], + ["skew", array([pd.NA], dtype="Float64")], + ["any", array([True, True], dtype="boolean")], + ["all", array([True, True], dtype="boolean")], + ], +) +def test_groupby_reductions(op, expected): + df = DataFrame( + { + "A": ["a", "b", "b"], + "B": array([1, None, 3], dtype="Int64"), + } + ) + result = getattr(df.groupby("A"), op)() + expected = DataFrame(expected, index=pd.Index(["a", "b"], name="A"), columns=["B"]) + + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "op, expected", + [ + ["sum", Series([4, 4], index=["B", "C"], dtype="Float64")], + ["prod", Series([3, 3], index=["B", "C"], dtype="Float64")], + ["min", Series([1, 1], index=["B", "C"], dtype="Float64")], + ["max", Series([3, 3], index=["B", "C"], dtype="Float64")], + ["mean", Series([2, 2], index=["B", "C"], dtype="Float64")], + ["median", Series([2, 2], index=["B", "C"], dtype="Float64")], + ["var", Series([2, 2], index=["B", "C"], dtype="Float64")], + ["std", Series([2**0.5, 2**0.5], index=["B", "C"], dtype="Float64")], + ["skew", Series([pd.NA, pd.NA], index=["B", "C"], dtype="Float64")], + ["kurt", Series([pd.NA, pd.NA], index=["B", "C"], dtype="Float64")], + ["any", Series([True, True, True], index=["A", "B", "C"], dtype="boolean")], + ["all", Series([True, True, True], index=["A", "B", "C"], dtype="boolean")], + ], +) +def test_mixed_reductions(op, expected): + df = DataFrame( + { + "A": ["a", "b", "b"], + "B": [1, None, 3], + "C": array([1, None, 3], dtype="Int64"), + } + ) + + # series + result = getattr(df.C, op)() + tm.assert_equal(result, expected["C"]) + + # frame + if op in ["any", "all"]: + result = getattr(df, op)() + else: + result = getattr(df, op)(numeric_only=True) + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/test_repr.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/test_repr.py new file mode 100644 index 0000000000000000000000000000000000000000..168210eed5d06a461bbf42dd1e1fae3db0fd851c --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/integer/test_repr.py @@ -0,0 +1,67 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas.core.arrays.integer import ( + Int8Dtype, + Int16Dtype, + Int32Dtype, + Int64Dtype, + UInt8Dtype, + UInt16Dtype, + UInt32Dtype, + UInt64Dtype, +) + + +def test_dtypes(dtype): + # smoke tests on auto dtype construction + + if dtype.is_signed_integer: + assert np.dtype(dtype.type).kind == "i" + else: + assert np.dtype(dtype.type).kind == "u" + assert dtype.name is not None + + +@pytest.mark.parametrize( + "dtype, expected", + [ + (Int8Dtype(), "Int8Dtype()"), + (Int16Dtype(), "Int16Dtype()"), + (Int32Dtype(), "Int32Dtype()"), + (Int64Dtype(), "Int64Dtype()"), + (UInt8Dtype(), "UInt8Dtype()"), + (UInt16Dtype(), "UInt16Dtype()"), + (UInt32Dtype(), "UInt32Dtype()"), + (UInt64Dtype(), "UInt64Dtype()"), + ], +) +def test_repr_dtype(dtype, expected): + assert repr(dtype) == expected + + +def test_repr_array(): + result = repr(pd.array([1, None, 3])) + expected = "\n[1, , 3]\nLength: 3, dtype: Int64" + assert result == expected + + +def test_repr_array_long(): + data = pd.array([1, 2, None] * 1000) + expected = ( + "\n" + "[ 1, 2, , 1, 2, , 1, 2, , 1,\n" + " ...\n" + " , 1, 2, , 1, 2, , 1, 2, ]\n" + "Length: 3000, dtype: Int64" + ) + result = repr(data) + assert result == expected + + +def test_frame_repr(data_missing): + df = pd.DataFrame({"A": data_missing}) + result = repr(df) + expected = " A\n0 \n1 1" + assert result == expected diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/interval/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/interval/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/interval/test_astype.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/interval/test_astype.py new file mode 100644 index 0000000000000000000000000000000000000000..d7a2140f817f3a8e5689d001768cf5642118b105 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/interval/test_astype.py @@ -0,0 +1,28 @@ +import pytest + +from pandas import ( + Categorical, + CategoricalDtype, + Index, + IntervalIndex, +) +import pandas._testing as tm + + +class TestAstype: + @pytest.mark.parametrize("ordered", [True, False]) + def test_astype_categorical_retains_ordered(self, ordered): + index = IntervalIndex.from_breaks(range(5)) + arr = index._data + + dtype = CategoricalDtype(None, ordered=ordered) + + expected = Categorical(list(arr), ordered=ordered) + result = arr.astype(dtype) + assert result.ordered is ordered + tm.assert_categorical_equal(result, expected) + + # test IntervalIndex.astype while we're at it. + result = index.astype(dtype) + expected = Index(expected) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/interval/test_formats.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/interval/test_formats.py new file mode 100644 index 0000000000000000000000000000000000000000..535efee51937473071c9490330eb68364769d5aa --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/interval/test_formats.py @@ -0,0 +1,13 @@ +from pandas.core.arrays import IntervalArray + + +def test_repr(): + # GH#25022 + arr = IntervalArray.from_tuples([(0, 1), (1, 2)]) + result = repr(arr) + expected = ( + "\n" + "[(0, 1], (1, 2]]\n" + "Length: 2, dtype: interval[int64, right]" + ) + assert result == expected diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/interval/test_interval.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/interval/test_interval.py new file mode 100644 index 0000000000000000000000000000000000000000..be4b2c3e7e74cddfaf8b2efa08879d3a6d8f1757 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/interval/test_interval.py @@ -0,0 +1,231 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + Index, + Interval, + IntervalIndex, + Timedelta, + Timestamp, + date_range, + timedelta_range, +) +import pandas._testing as tm +from pandas.core.arrays import IntervalArray + + +@pytest.fixture( + params=[ + (Index([0, 2, 4]), Index([1, 3, 5])), + (Index([0.0, 1.0, 2.0]), Index([1.0, 2.0, 3.0])), + (timedelta_range("0 days", periods=3), timedelta_range("1 day", periods=3)), + (date_range("20170101", periods=3), date_range("20170102", periods=3)), + ( + date_range("20170101", periods=3, tz="US/Eastern"), + date_range("20170102", periods=3, tz="US/Eastern"), + ), + ], + ids=lambda x: str(x[0].dtype), +) +def left_right_dtypes(request): + """ + Fixture for building an IntervalArray from various dtypes + """ + return request.param + + +class TestAttributes: + @pytest.mark.parametrize( + "left, right", + [ + (0, 1), + (Timedelta("0 days"), Timedelta("1 day")), + (Timestamp("2018-01-01"), Timestamp("2018-01-02")), + ( + Timestamp("2018-01-01", tz="US/Eastern"), + Timestamp("2018-01-02", tz="US/Eastern"), + ), + ], + ) + @pytest.mark.parametrize("constructor", [IntervalArray, IntervalIndex]) + def test_is_empty(self, constructor, left, right, closed): + # GH27219 + tuples = [(left, left), (left, right), np.nan] + expected = np.array([closed != "both", False, False]) + result = constructor.from_tuples(tuples, closed=closed).is_empty + tm.assert_numpy_array_equal(result, expected) + + +class TestMethods: + @pytest.mark.parametrize("new_closed", ["left", "right", "both", "neither"]) + def test_set_closed(self, closed, new_closed): + # GH 21670 + array = IntervalArray.from_breaks(range(10), closed=closed) + result = array.set_closed(new_closed) + expected = IntervalArray.from_breaks(range(10), closed=new_closed) + tm.assert_extension_array_equal(result, expected) + + @pytest.mark.parametrize( + "other", + [ + Interval(0, 1, closed="right"), + IntervalArray.from_breaks([1, 2, 3, 4], closed="right"), + ], + ) + def test_where_raises(self, other): + # GH#45768 The IntervalArray methods raises; the Series method coerces + ser = pd.Series(IntervalArray.from_breaks([1, 2, 3, 4], closed="left")) + mask = np.array([True, False, True]) + match = "'value.closed' is 'right', expected 'left'." + with pytest.raises(ValueError, match=match): + ser.array._where(mask, other) + + res = ser.where(mask, other=other) + expected = ser.astype(object).where(mask, other) + tm.assert_series_equal(res, expected) + + def test_shift(self): + # https://github.com/pandas-dev/pandas/issues/31495, GH#22428, GH#31502 + a = IntervalArray.from_breaks([1, 2, 3]) + result = a.shift() + # int -> float + expected = IntervalArray.from_tuples([(np.nan, np.nan), (1.0, 2.0)]) + tm.assert_interval_array_equal(result, expected) + + msg = "can only insert Interval objects and NA into an IntervalArray" + with pytest.raises(TypeError, match=msg): + a.shift(1, fill_value=pd.NaT) + + def test_shift_datetime(self): + # GH#31502, GH#31504 + a = IntervalArray.from_breaks(date_range("2000", periods=4)) + result = a.shift(2) + expected = a.take([-1, -1, 0], allow_fill=True) + tm.assert_interval_array_equal(result, expected) + + result = a.shift(-1) + expected = a.take([1, 2, -1], allow_fill=True) + tm.assert_interval_array_equal(result, expected) + + msg = "can only insert Interval objects and NA into an IntervalArray" + with pytest.raises(TypeError, match=msg): + a.shift(1, fill_value=np.timedelta64("NaT", "ns")) + + +class TestSetitem: + def test_set_na(self, left_right_dtypes): + left, right = left_right_dtypes + left = left.copy(deep=True) + right = right.copy(deep=True) + result = IntervalArray.from_arrays(left, right) + + if result.dtype.subtype.kind not in ["m", "M"]: + msg = "'value' should be an interval type, got <.*NaTType'> instead." + with pytest.raises(TypeError, match=msg): + result[0] = pd.NaT + if result.dtype.subtype.kind in ["i", "u"]: + msg = "Cannot set float NaN to integer-backed IntervalArray" + # GH#45484 TypeError, not ValueError, matches what we get with + # non-NA un-holdable value. + with pytest.raises(TypeError, match=msg): + result[0] = np.nan + return + + result[0] = np.nan + + expected_left = Index([left._na_value] + list(left[1:])) + expected_right = Index([right._na_value] + list(right[1:])) + expected = IntervalArray.from_arrays(expected_left, expected_right) + + tm.assert_extension_array_equal(result, expected) + + def test_setitem_mismatched_closed(self): + arr = IntervalArray.from_breaks(range(4)) + orig = arr.copy() + other = arr.set_closed("both") + + msg = "'value.closed' is 'both', expected 'right'" + with pytest.raises(ValueError, match=msg): + arr[0] = other[0] + with pytest.raises(ValueError, match=msg): + arr[:1] = other[:1] + with pytest.raises(ValueError, match=msg): + arr[:0] = other[:0] + with pytest.raises(ValueError, match=msg): + arr[:] = other[::-1] + with pytest.raises(ValueError, match=msg): + arr[:] = list(other[::-1]) + with pytest.raises(ValueError, match=msg): + arr[:] = other[::-1].astype(object) + with pytest.raises(ValueError, match=msg): + arr[:] = other[::-1].astype("category") + + # empty list should be no-op + arr[:0] = [] + tm.assert_interval_array_equal(arr, orig) + + +class TestReductions: + def test_min_max_invalid_axis(self, left_right_dtypes): + left, right = left_right_dtypes + left = left.copy(deep=True) + right = right.copy(deep=True) + arr = IntervalArray.from_arrays(left, right) + + msg = "`axis` must be fewer than the number of dimensions" + for axis in [-2, 1]: + with pytest.raises(ValueError, match=msg): + arr.min(axis=axis) + with pytest.raises(ValueError, match=msg): + arr.max(axis=axis) + + msg = "'>=' not supported between" + with pytest.raises(TypeError, match=msg): + arr.min(axis="foo") + with pytest.raises(TypeError, match=msg): + arr.max(axis="foo") + + def test_min_max(self, left_right_dtypes, index_or_series_or_array): + # GH#44746 + left, right = left_right_dtypes + left = left.copy(deep=True) + right = right.copy(deep=True) + arr = IntervalArray.from_arrays(left, right) + + # The expected results below are only valid if monotonic + assert left.is_monotonic_increasing + assert Index(arr).is_monotonic_increasing + + MIN = arr[0] + MAX = arr[-1] + + indexer = np.arange(len(arr)) + np.random.default_rng(2).shuffle(indexer) + arr = arr.take(indexer) + + arr_na = arr.insert(2, np.nan) + + arr = index_or_series_or_array(arr) + arr_na = index_or_series_or_array(arr_na) + + for skipna in [True, False]: + res = arr.min(skipna=skipna) + assert res == MIN + assert type(res) == type(MIN) + + res = arr.max(skipna=skipna) + assert res == MAX + assert type(res) == type(MAX) + + res = arr_na.min(skipna=False) + assert np.isnan(res) + res = arr_na.max(skipna=False) + assert np.isnan(res) + + res = arr_na.min(skipna=True) + assert res == MIN + assert type(res) == type(MIN) + res = arr_na.max(skipna=True) + assert res == MAX + assert type(res) == type(MAX) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/interval/test_interval_pyarrow.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/interval/test_interval_pyarrow.py new file mode 100644 index 0000000000000000000000000000000000000000..ef8701be81e2b9248c29fc4e901161fd18d72bbe --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/interval/test_interval_pyarrow.py @@ -0,0 +1,160 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm +from pandas.core.arrays import IntervalArray + + +def test_arrow_extension_type(): + pa = pytest.importorskip("pyarrow") + + from pandas.core.arrays.arrow.extension_types import ArrowIntervalType + + p1 = ArrowIntervalType(pa.int64(), "left") + p2 = ArrowIntervalType(pa.int64(), "left") + p3 = ArrowIntervalType(pa.int64(), "right") + + assert p1.closed == "left" + assert p1 == p2 + assert p1 != p3 + assert hash(p1) == hash(p2) + assert hash(p1) != hash(p3) + + +def test_arrow_array(): + pa = pytest.importorskip("pyarrow") + + from pandas.core.arrays.arrow.extension_types import ArrowIntervalType + + intervals = pd.interval_range(1, 5, freq=1).array + + result = pa.array(intervals) + assert isinstance(result.type, ArrowIntervalType) + assert result.type.closed == intervals.closed + assert result.type.subtype == pa.int64() + assert result.storage.field("left").equals(pa.array([1, 2, 3, 4], type="int64")) + assert result.storage.field("right").equals(pa.array([2, 3, 4, 5], type="int64")) + + expected = pa.array([{"left": i, "right": i + 1} for i in range(1, 5)]) + assert result.storage.equals(expected) + + # convert to its storage type + result = pa.array(intervals, type=expected.type) + assert result.equals(expected) + + # unsupported conversions + with pytest.raises(TypeError, match="Not supported to convert IntervalArray"): + pa.array(intervals, type="float64") + + with pytest.raises(TypeError, match="Not supported to convert IntervalArray"): + pa.array(intervals, type=ArrowIntervalType(pa.float64(), "left")) + + +def test_arrow_array_missing(): + pa = pytest.importorskip("pyarrow") + + from pandas.core.arrays.arrow.extension_types import ArrowIntervalType + + arr = IntervalArray.from_breaks([0.0, 1.0, 2.0, 3.0]) + arr[1] = None + + result = pa.array(arr) + assert isinstance(result.type, ArrowIntervalType) + assert result.type.closed == arr.closed + assert result.type.subtype == pa.float64() + + # fields have missing values (not NaN) + left = pa.array([0.0, None, 2.0], type="float64") + right = pa.array([1.0, None, 3.0], type="float64") + assert result.storage.field("left").equals(left) + assert result.storage.field("right").equals(right) + + # structarray itself also has missing values on the array level + vals = [ + {"left": 0.0, "right": 1.0}, + {"left": None, "right": None}, + {"left": 2.0, "right": 3.0}, + ] + expected = pa.StructArray.from_pandas(vals, mask=np.array([False, True, False])) + assert result.storage.equals(expected) + + +@pytest.mark.filterwarnings( + "ignore:Passing a BlockManager to DataFrame:DeprecationWarning" +) +@pytest.mark.parametrize( + "breaks", + [[0.0, 1.0, 2.0, 3.0], pd.date_range("2017", periods=4, freq="D")], + ids=["float", "datetime64[ns]"], +) +def test_arrow_table_roundtrip(breaks): + pa = pytest.importorskip("pyarrow") + + from pandas.core.arrays.arrow.extension_types import ArrowIntervalType + + arr = IntervalArray.from_breaks(breaks) + arr[1] = None + df = pd.DataFrame({"a": arr}) + + table = pa.table(df) + assert isinstance(table.field("a").type, ArrowIntervalType) + result = table.to_pandas() + assert isinstance(result["a"].dtype, pd.IntervalDtype) + tm.assert_frame_equal(result, df) + + table2 = pa.concat_tables([table, table]) + result = table2.to_pandas() + expected = pd.concat([df, df], ignore_index=True) + tm.assert_frame_equal(result, expected) + + # GH#41040 + table = pa.table( + [pa.chunked_array([], type=table.column(0).type)], schema=table.schema + ) + result = table.to_pandas() + tm.assert_frame_equal(result, expected[0:0]) + + +@pytest.mark.filterwarnings( + "ignore:Passing a BlockManager to DataFrame:DeprecationWarning" +) +@pytest.mark.parametrize( + "breaks", + [[0.0, 1.0, 2.0, 3.0], pd.date_range("2017", periods=4, freq="D")], + ids=["float", "datetime64[ns]"], +) +def test_arrow_table_roundtrip_without_metadata(breaks): + pa = pytest.importorskip("pyarrow") + + arr = IntervalArray.from_breaks(breaks) + arr[1] = None + df = pd.DataFrame({"a": arr}) + + table = pa.table(df) + # remove the metadata + table = table.replace_schema_metadata() + assert table.schema.metadata is None + + result = table.to_pandas() + assert isinstance(result["a"].dtype, pd.IntervalDtype) + tm.assert_frame_equal(result, df) + + +def test_from_arrow_from_raw_struct_array(): + # in case pyarrow lost the Interval extension type (eg on parquet roundtrip + # with datetime64[ns] subtype, see GH-45881), still allow conversion + # from arrow to IntervalArray + pa = pytest.importorskip("pyarrow") + + arr = pa.array([{"left": 0, "right": 1}, {"left": 1, "right": 2}]) + dtype = pd.IntervalDtype(np.dtype("int64"), closed="neither") + + result = dtype.__from_arrow__(arr) + expected = IntervalArray.from_breaks( + np.array([0, 1, 2], dtype="int64"), closed="neither" + ) + tm.assert_extension_array_equal(result, expected) + + result = dtype.__from_arrow__(pa.chunked_array([arr])) + tm.assert_extension_array_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/interval/test_overlaps.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/interval/test_overlaps.py new file mode 100644 index 0000000000000000000000000000000000000000..4853bec51106c05781a4c11921f0e082934147ec --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/interval/test_overlaps.py @@ -0,0 +1,93 @@ +"""Tests for Interval-Interval operations, such as overlaps, contains, etc.""" +import numpy as np +import pytest + +from pandas import ( + Interval, + IntervalIndex, + Timedelta, + Timestamp, +) +import pandas._testing as tm +from pandas.core.arrays import IntervalArray + + +@pytest.fixture(params=[IntervalArray, IntervalIndex]) +def constructor(request): + """ + Fixture for testing both interval container classes. + """ + return request.param + + +@pytest.fixture( + params=[ + (Timedelta("0 days"), Timedelta("1 day")), + (Timestamp("2018-01-01"), Timedelta("1 day")), + (0, 1), + ], + ids=lambda x: type(x[0]).__name__, +) +def start_shift(request): + """ + Fixture for generating intervals of different types from a start value + and a shift value that can be added to start to generate an endpoint. + """ + return request.param + + +class TestOverlaps: + def test_overlaps_interval(self, constructor, start_shift, closed, other_closed): + start, shift = start_shift + interval = Interval(start, start + 3 * shift, other_closed) + + # intervals: identical, nested, spanning, partial, adjacent, disjoint + tuples = [ + (start, start + 3 * shift), + (start + shift, start + 2 * shift), + (start - shift, start + 4 * shift), + (start + 2 * shift, start + 4 * shift), + (start + 3 * shift, start + 4 * shift), + (start + 4 * shift, start + 5 * shift), + ] + interval_container = constructor.from_tuples(tuples, closed) + + adjacent = interval.closed_right and interval_container.closed_left + expected = np.array([True, True, True, True, adjacent, False]) + result = interval_container.overlaps(interval) + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize("other_constructor", [IntervalArray, IntervalIndex]) + def test_overlaps_interval_container(self, constructor, other_constructor): + # TODO: modify this test when implemented + interval_container = constructor.from_breaks(range(5)) + other_container = other_constructor.from_breaks(range(5)) + with pytest.raises(NotImplementedError, match="^$"): + interval_container.overlaps(other_container) + + def test_overlaps_na(self, constructor, start_shift): + """NA values are marked as False""" + start, shift = start_shift + interval = Interval(start, start + shift) + + tuples = [ + (start, start + shift), + np.nan, + (start + 2 * shift, start + 3 * shift), + ] + interval_container = constructor.from_tuples(tuples) + + expected = np.array([True, False, False]) + result = interval_container.overlaps(interval) + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize( + "other", + [10, True, "foo", Timedelta("1 day"), Timestamp("2018-01-01")], + ids=lambda x: type(x).__name__, + ) + def test_overlaps_invalid_type(self, constructor, other): + interval_container = constructor.from_breaks(range(5)) + msg = f"`other` must be Interval-like, got {type(other).__name__}" + with pytest.raises(TypeError, match=msg): + interval_container.overlaps(other) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/masked/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/masked/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/masked/test_arithmetic.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/masked/test_arithmetic.py new file mode 100644 index 0000000000000000000000000000000000000000..f4b571ca627b3da34e943972ba70b03bae74417a --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/masked/test_arithmetic.py @@ -0,0 +1,248 @@ +from __future__ import annotations + +from typing import Any + +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm + +# integer dtypes +arrays = [pd.array([1, 2, 3, None], dtype=dtype) for dtype in tm.ALL_INT_EA_DTYPES] +scalars: list[Any] = [2] * len(arrays) +# floating dtypes +arrays += [pd.array([0.1, 0.2, 0.3, None], dtype=dtype) for dtype in tm.FLOAT_EA_DTYPES] +scalars += [0.2, 0.2] +# boolean +arrays += [pd.array([True, False, True, None], dtype="boolean")] +scalars += [False] + + +@pytest.fixture(params=zip(arrays, scalars), ids=[a.dtype.name for a in arrays]) +def data(request): + """Fixture returning parametrized (array, scalar) tuple. + + Used to test equivalence of scalars, numpy arrays with array ops, and the + equivalence of DataFrame and Series ops. + """ + return request.param + + +def check_skip(data, op_name): + if isinstance(data.dtype, pd.BooleanDtype) and "sub" in op_name: + pytest.skip("subtract not implemented for boolean") + + +def is_bool_not_implemented(data, op_name): + # match non-masked behavior + return data.dtype.kind == "b" and op_name.strip("_").lstrip("r") in [ + "pow", + "truediv", + "floordiv", + ] + + +# Test equivalence of scalars, numpy arrays with array ops +# ----------------------------------------------------------------------------- + + +def test_array_scalar_like_equivalence(data, all_arithmetic_operators): + data, scalar = data + op = tm.get_op_from_name(all_arithmetic_operators) + check_skip(data, all_arithmetic_operators) + + scalar_array = pd.array([scalar] * len(data), dtype=data.dtype) + + # TODO also add len-1 array (np.array([scalar], dtype=data.dtype.numpy_dtype)) + for scalar in [scalar, data.dtype.type(scalar)]: + if is_bool_not_implemented(data, all_arithmetic_operators): + msg = "operator '.*' not implemented for bool dtypes" + with pytest.raises(NotImplementedError, match=msg): + op(data, scalar) + with pytest.raises(NotImplementedError, match=msg): + op(data, scalar_array) + else: + result = op(data, scalar) + expected = op(data, scalar_array) + tm.assert_extension_array_equal(result, expected) + + +def test_array_NA(data, all_arithmetic_operators): + data, _ = data + op = tm.get_op_from_name(all_arithmetic_operators) + check_skip(data, all_arithmetic_operators) + + scalar = pd.NA + scalar_array = pd.array([pd.NA] * len(data), dtype=data.dtype) + + mask = data._mask.copy() + + if is_bool_not_implemented(data, all_arithmetic_operators): + msg = "operator '.*' not implemented for bool dtypes" + with pytest.raises(NotImplementedError, match=msg): + op(data, scalar) + # GH#45421 check op doesn't alter data._mask inplace + tm.assert_numpy_array_equal(mask, data._mask) + return + + result = op(data, scalar) + # GH#45421 check op doesn't alter data._mask inplace + tm.assert_numpy_array_equal(mask, data._mask) + + expected = op(data, scalar_array) + tm.assert_numpy_array_equal(mask, data._mask) + + tm.assert_extension_array_equal(result, expected) + + +def test_numpy_array_equivalence(data, all_arithmetic_operators): + data, scalar = data + op = tm.get_op_from_name(all_arithmetic_operators) + check_skip(data, all_arithmetic_operators) + + numpy_array = np.array([scalar] * len(data), dtype=data.dtype.numpy_dtype) + pd_array = pd.array(numpy_array, dtype=data.dtype) + + if is_bool_not_implemented(data, all_arithmetic_operators): + msg = "operator '.*' not implemented for bool dtypes" + with pytest.raises(NotImplementedError, match=msg): + op(data, numpy_array) + with pytest.raises(NotImplementedError, match=msg): + op(data, pd_array) + return + + result = op(data, numpy_array) + expected = op(data, pd_array) + tm.assert_extension_array_equal(result, expected) + + +# Test equivalence with Series and DataFrame ops +# ----------------------------------------------------------------------------- + + +def test_frame(data, all_arithmetic_operators): + data, scalar = data + op = tm.get_op_from_name(all_arithmetic_operators) + check_skip(data, all_arithmetic_operators) + + # DataFrame with scalar + df = pd.DataFrame({"A": data}) + + if is_bool_not_implemented(data, all_arithmetic_operators): + msg = "operator '.*' not implemented for bool dtypes" + with pytest.raises(NotImplementedError, match=msg): + op(df, scalar) + with pytest.raises(NotImplementedError, match=msg): + op(data, scalar) + return + + result = op(df, scalar) + expected = pd.DataFrame({"A": op(data, scalar)}) + tm.assert_frame_equal(result, expected) + + +def test_series(data, all_arithmetic_operators): + data, scalar = data + op = tm.get_op_from_name(all_arithmetic_operators) + check_skip(data, all_arithmetic_operators) + + ser = pd.Series(data) + + others = [ + scalar, + np.array([scalar] * len(data), dtype=data.dtype.numpy_dtype), + pd.array([scalar] * len(data), dtype=data.dtype), + pd.Series([scalar] * len(data), dtype=data.dtype), + ] + + for other in others: + if is_bool_not_implemented(data, all_arithmetic_operators): + msg = "operator '.*' not implemented for bool dtypes" + with pytest.raises(NotImplementedError, match=msg): + op(ser, other) + + else: + result = op(ser, other) + expected = pd.Series(op(data, other)) + tm.assert_series_equal(result, expected) + + +# Test generic characteristics / errors +# ----------------------------------------------------------------------------- + + +def test_error_invalid_object(data, all_arithmetic_operators): + data, _ = data + + op = all_arithmetic_operators + opa = getattr(data, op) + + # 2d -> return NotImplemented + result = opa(pd.DataFrame({"A": data})) + assert result is NotImplemented + + msg = r"can only perform ops with 1-d structures" + with pytest.raises(NotImplementedError, match=msg): + opa(np.arange(len(data)).reshape(-1, len(data))) + + +def test_error_len_mismatch(data, all_arithmetic_operators): + # operating with a list-like with non-matching length raises + data, scalar = data + op = tm.get_op_from_name(all_arithmetic_operators) + + other = [scalar] * (len(data) - 1) + + err = ValueError + msg = "|".join( + [ + r"operands could not be broadcast together with shapes \(3,\) \(4,\)", + r"operands could not be broadcast together with shapes \(4,\) \(3,\)", + ] + ) + if data.dtype.kind == "b" and all_arithmetic_operators.strip("_") in [ + "sub", + "rsub", + ]: + err = TypeError + msg = ( + r"numpy boolean subtract, the `\-` operator, is not supported, use " + r"the bitwise_xor, the `\^` operator, or the logical_xor function instead" + ) + elif is_bool_not_implemented(data, all_arithmetic_operators): + msg = "operator '.*' not implemented for bool dtypes" + err = NotImplementedError + + for other in [other, np.array(other)]: + with pytest.raises(err, match=msg): + op(data, other) + + s = pd.Series(data) + with pytest.raises(err, match=msg): + op(s, other) + + +@pytest.mark.parametrize("op", ["__neg__", "__abs__", "__invert__"]) +def test_unary_op_does_not_propagate_mask(data, op): + # https://github.com/pandas-dev/pandas/issues/39943 + data, _ = data + ser = pd.Series(data) + + if op == "__invert__" and data.dtype.kind == "f": + # we follow numpy in raising + msg = "ufunc 'invert' not supported for the input types" + with pytest.raises(TypeError, match=msg): + getattr(ser, op)() + with pytest.raises(TypeError, match=msg): + getattr(data, op)() + with pytest.raises(TypeError, match=msg): + # Check that this is still the numpy behavior + getattr(data._data, op)() + + return + + result = getattr(ser, op)() + expected = result.copy(deep=True) + ser[0] = None + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/masked/test_arrow_compat.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/masked/test_arrow_compat.py new file mode 100644 index 0000000000000000000000000000000000000000..293ee4095d02e1b35ace33458e38c61d87181373 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/masked/test_arrow_compat.py @@ -0,0 +1,210 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm + +pytestmark = pytest.mark.filterwarnings( + "ignore:Passing a BlockManager to DataFrame:DeprecationWarning" +) + + +pa = pytest.importorskip("pyarrow") + +from pandas.core.arrays.arrow._arrow_utils import pyarrow_array_to_numpy_and_mask + +arrays = [pd.array([1, 2, 3, None], dtype=dtype) for dtype in tm.ALL_INT_EA_DTYPES] +arrays += [pd.array([0.1, 0.2, 0.3, None], dtype=dtype) for dtype in tm.FLOAT_EA_DTYPES] +arrays += [pd.array([True, False, True, None], dtype="boolean")] + + +@pytest.fixture(params=arrays, ids=[a.dtype.name for a in arrays]) +def data(request): + """ + Fixture returning parametrized array from given dtype, including integer, + float and boolean + """ + return request.param + + +def test_arrow_array(data): + arr = pa.array(data) + expected = pa.array( + data.to_numpy(object, na_value=None), + type=pa.from_numpy_dtype(data.dtype.numpy_dtype), + ) + assert arr.equals(expected) + + +def test_arrow_roundtrip(data): + df = pd.DataFrame({"a": data}) + table = pa.table(df) + assert table.field("a").type == str(data.dtype.numpy_dtype) + + result = table.to_pandas() + assert result["a"].dtype == data.dtype + tm.assert_frame_equal(result, df) + + +def test_dataframe_from_arrow_types_mapper(): + def types_mapper(arrow_type): + if pa.types.is_boolean(arrow_type): + return pd.BooleanDtype() + elif pa.types.is_integer(arrow_type): + return pd.Int64Dtype() + + bools_array = pa.array([True, None, False], type=pa.bool_()) + ints_array = pa.array([1, None, 2], type=pa.int64()) + small_ints_array = pa.array([-1, 0, 7], type=pa.int8()) + record_batch = pa.RecordBatch.from_arrays( + [bools_array, ints_array, small_ints_array], ["bools", "ints", "small_ints"] + ) + result = record_batch.to_pandas(types_mapper=types_mapper) + bools = pd.Series([True, None, False], dtype="boolean") + ints = pd.Series([1, None, 2], dtype="Int64") + small_ints = pd.Series([-1, 0, 7], dtype="Int64") + expected = pd.DataFrame({"bools": bools, "ints": ints, "small_ints": small_ints}) + tm.assert_frame_equal(result, expected) + + +def test_arrow_load_from_zero_chunks(data): + # GH-41040 + + df = pd.DataFrame({"a": data[0:0]}) + table = pa.table(df) + assert table.field("a").type == str(data.dtype.numpy_dtype) + table = pa.table( + [pa.chunked_array([], type=table.field("a").type)], schema=table.schema + ) + result = table.to_pandas() + assert result["a"].dtype == data.dtype + tm.assert_frame_equal(result, df) + + +def test_arrow_from_arrow_uint(): + # https://github.com/pandas-dev/pandas/issues/31896 + # possible mismatch in types + + dtype = pd.UInt32Dtype() + result = dtype.__from_arrow__(pa.array([1, 2, 3, 4, None], type="int64")) + expected = pd.array([1, 2, 3, 4, None], dtype="UInt32") + + tm.assert_extension_array_equal(result, expected) + + +def test_arrow_sliced(data): + # https://github.com/pandas-dev/pandas/issues/38525 + + df = pd.DataFrame({"a": data}) + table = pa.table(df) + result = table.slice(2, None).to_pandas() + expected = df.iloc[2:].reset_index(drop=True) + tm.assert_frame_equal(result, expected) + + # no missing values + df2 = df.fillna(data[0]) + table = pa.table(df2) + result = table.slice(2, None).to_pandas() + expected = df2.iloc[2:].reset_index(drop=True) + tm.assert_frame_equal(result, expected) + + +@pytest.fixture +def np_dtype_to_arrays(any_real_numpy_dtype): + """ + Fixture returning actual and expected dtype, pandas and numpy arrays and + mask from a given numpy dtype + """ + np_dtype = np.dtype(any_real_numpy_dtype) + pa_type = pa.from_numpy_dtype(np_dtype) + + # None ensures the creation of a bitmask buffer. + pa_array = pa.array([0, 1, 2, None], type=pa_type) + # Since masked Arrow buffer slots are not required to contain a specific + # value, assert only the first three values of the created np.array + np_expected = np.array([0, 1, 2], dtype=np_dtype) + mask_expected = np.array([True, True, True, False]) + return np_dtype, pa_array, np_expected, mask_expected + + +def test_pyarrow_array_to_numpy_and_mask(np_dtype_to_arrays): + """ + Test conversion from pyarrow array to numpy array. + + Modifies the pyarrow buffer to contain padding and offset, which are + considered valid buffers by pyarrow. + + Also tests empty pyarrow arrays with non empty buffers. + See https://github.com/pandas-dev/pandas/issues/40896 + """ + np_dtype, pa_array, np_expected, mask_expected = np_dtype_to_arrays + data, mask = pyarrow_array_to_numpy_and_mask(pa_array, np_dtype) + tm.assert_numpy_array_equal(data[:3], np_expected) + tm.assert_numpy_array_equal(mask, mask_expected) + + mask_buffer = pa_array.buffers()[0] + data_buffer = pa_array.buffers()[1] + data_buffer_bytes = pa_array.buffers()[1].to_pybytes() + + # Add trailing padding to the buffer. + data_buffer_trail = pa.py_buffer(data_buffer_bytes + b"\x00") + pa_array_trail = pa.Array.from_buffers( + type=pa_array.type, + length=len(pa_array), + buffers=[mask_buffer, data_buffer_trail], + offset=pa_array.offset, + ) + pa_array_trail.validate() + data, mask = pyarrow_array_to_numpy_and_mask(pa_array_trail, np_dtype) + tm.assert_numpy_array_equal(data[:3], np_expected) + tm.assert_numpy_array_equal(mask, mask_expected) + + # Add offset to the buffer. + offset = b"\x00" * (pa_array.type.bit_width // 8) + data_buffer_offset = pa.py_buffer(offset + data_buffer_bytes) + mask_buffer_offset = pa.py_buffer(b"\x0E") + pa_array_offset = pa.Array.from_buffers( + type=pa_array.type, + length=len(pa_array), + buffers=[mask_buffer_offset, data_buffer_offset], + offset=pa_array.offset + 1, + ) + pa_array_offset.validate() + data, mask = pyarrow_array_to_numpy_and_mask(pa_array_offset, np_dtype) + tm.assert_numpy_array_equal(data[:3], np_expected) + tm.assert_numpy_array_equal(mask, mask_expected) + + # Empty array + np_expected_empty = np.array([], dtype=np_dtype) + mask_expected_empty = np.array([], dtype=np.bool_) + + pa_array_offset = pa.Array.from_buffers( + type=pa_array.type, + length=0, + buffers=[mask_buffer, data_buffer], + offset=pa_array.offset, + ) + pa_array_offset.validate() + data, mask = pyarrow_array_to_numpy_and_mask(pa_array_offset, np_dtype) + tm.assert_numpy_array_equal(data[:3], np_expected_empty) + tm.assert_numpy_array_equal(mask, mask_expected_empty) + + +@pytest.mark.parametrize( + "arr", [pa.nulls(10), pa.chunked_array([pa.nulls(4), pa.nulls(6)])] +) +def test_from_arrow_null(data, arr): + res = data.dtype.__from_arrow__(arr) + assert res.isna().all() + assert len(res) == 10 + + +def test_from_arrow_type_error(data): + # ensure that __from_arrow__ returns a TypeError when getting a wrong + # array type + + arr = pa.array(data).cast("string") + with pytest.raises(TypeError, match=None): + # we don't test the exact error message, only the fact that it raises + # a TypeError is relevant + data.dtype.__from_arrow__(arr) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/masked/test_function.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/masked/test_function.py new file mode 100644 index 0000000000000000000000000000000000000000..b259018cd6121c53c767e36e3c757211643262d6 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/masked/test_function.py @@ -0,0 +1,74 @@ +import numpy as np +import pytest + +from pandas.core.dtypes.common import is_integer_dtype + +import pandas as pd +import pandas._testing as tm +from pandas.core.arrays import BaseMaskedArray + +arrays = [pd.array([1, 2, 3, None], dtype=dtype) for dtype in tm.ALL_INT_EA_DTYPES] +arrays += [ + pd.array([0.141, -0.268, 5.895, None], dtype=dtype) for dtype in tm.FLOAT_EA_DTYPES +] + + +@pytest.fixture(params=arrays, ids=[a.dtype.name for a in arrays]) +def data(request): + """ + Fixture returning parametrized 'data' array with different integer and + floating point types + """ + return request.param + + +@pytest.fixture() +def numpy_dtype(data): + """ + Fixture returning numpy dtype from 'data' input array. + """ + # For integer dtype, the numpy conversion must be done to float + if is_integer_dtype(data): + numpy_dtype = float + else: + numpy_dtype = data.dtype.type + return numpy_dtype + + +def test_round(data, numpy_dtype): + # No arguments + result = data.round() + expected = pd.array( + np.round(data.to_numpy(dtype=numpy_dtype, na_value=None)), dtype=data.dtype + ) + tm.assert_extension_array_equal(result, expected) + + # Decimals argument + result = data.round(decimals=2) + expected = pd.array( + np.round(data.to_numpy(dtype=numpy_dtype, na_value=None), decimals=2), + dtype=data.dtype, + ) + tm.assert_extension_array_equal(result, expected) + + +def test_tolist(data): + result = data.tolist() + expected = list(data) + tm.assert_equal(result, expected) + + +def test_to_numpy(): + # GH#56991 + + class MyStringArray(BaseMaskedArray): + dtype = pd.StringDtype() + _dtype_cls = pd.StringDtype + _internal_fill_value = pd.NA + + arr = MyStringArray( + values=np.array(["a", "b", "c"]), mask=np.array([False, True, False]) + ) + result = arr.to_numpy() + expected = np.array(["a", pd.NA, "c"]) + tm.assert_numpy_array_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/masked/test_indexing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/masked/test_indexing.py new file mode 100644 index 0000000000000000000000000000000000000000..753d562c87ffa86bbbf665bf3dbbd409eddfdd88 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/masked/test_indexing.py @@ -0,0 +1,60 @@ +import re + +import numpy as np +import pytest + +import pandas as pd + + +class TestSetitemValidation: + def _check_setitem_invalid(self, arr, invalid): + msg = f"Invalid value '{invalid!s}' for dtype '{arr.dtype}'" + msg = re.escape(msg) + with pytest.raises(TypeError, match=msg): + arr[0] = invalid + + with pytest.raises(TypeError, match=msg): + arr[:] = invalid + + with pytest.raises(TypeError, match=msg): + arr[[0]] = invalid + + # FIXME: don't leave commented-out + # with pytest.raises(TypeError): + # arr[[0]] = [invalid] + + # with pytest.raises(TypeError): + # arr[[0]] = np.array([invalid], dtype=object) + + # Series non-coercion, behavior subject to change + ser = pd.Series(arr) + with pytest.raises(TypeError, match=msg): + ser[0] = invalid + # TODO: so, so many other variants of this... + + _invalid_scalars = [ + 1 + 2j, + "True", + "1", + "1.0", + pd.NaT, + np.datetime64("NaT"), + np.timedelta64("NaT"), + ] + + @pytest.mark.parametrize( + "invalid", _invalid_scalars + [1, 1.0, np.int64(1), np.float64(1)] + ) + def test_setitem_validation_scalar_bool(self, invalid): + arr = pd.array([True, False, None], dtype="boolean") + self._check_setitem_invalid(arr, invalid) + + @pytest.mark.parametrize("invalid", _invalid_scalars + [True, 1.5, np.float64(1.5)]) + def test_setitem_validation_scalar_int(self, invalid, any_int_ea_dtype): + arr = pd.array([1, 2, None], dtype=any_int_ea_dtype) + self._check_setitem_invalid(arr, invalid) + + @pytest.mark.parametrize("invalid", _invalid_scalars + [True]) + def test_setitem_validation_scalar_float(self, invalid, float_ea_dtype): + arr = pd.array([1, 2, None], dtype=float_ea_dtype) + self._check_setitem_invalid(arr, invalid) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/masked_shared.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/masked_shared.py new file mode 100644 index 0000000000000000000000000000000000000000..3e74402263cf9c119ec344c5da48dd8598970f69 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/masked_shared.py @@ -0,0 +1,154 @@ +""" +Tests shared by MaskedArray subclasses. +""" +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm +from pandas.tests.extension.base import BaseOpsUtil + + +class ComparisonOps(BaseOpsUtil): + def _compare_other(self, data, op, other): + # array + result = pd.Series(op(data, other)) + expected = pd.Series(op(data._data, other), dtype="boolean") + + # fill the nan locations + expected[data._mask] = pd.NA + + tm.assert_series_equal(result, expected) + + # series + ser = pd.Series(data) + result = op(ser, other) + + # Set nullable dtype here to avoid upcasting when setting to pd.NA below + expected = op(pd.Series(data._data), other).astype("boolean") + + # fill the nan locations + expected[data._mask] = pd.NA + + tm.assert_series_equal(result, expected) + + # subclass will override to parametrize 'other' + def test_scalar(self, other, comparison_op, dtype): + op = comparison_op + left = pd.array([1, 0, None], dtype=dtype) + + result = op(left, other) + + if other is pd.NA: + expected = pd.array([None, None, None], dtype="boolean") + else: + values = op(left._data, other) + expected = pd.arrays.BooleanArray(values, left._mask, copy=True) + tm.assert_extension_array_equal(result, expected) + + # ensure we haven't mutated anything inplace + result[0] = pd.NA + tm.assert_extension_array_equal(left, pd.array([1, 0, None], dtype=dtype)) + + +class NumericOps: + # Shared by IntegerArray and FloatingArray, not BooleanArray + + def test_searchsorted_nan(self, dtype): + # The base class casts to object dtype, for which searchsorted returns + # 0 from the left and 10 from the right. + arr = pd.array(range(10), dtype=dtype) + + assert arr.searchsorted(np.nan, side="left") == 10 + assert arr.searchsorted(np.nan, side="right") == 10 + + def test_no_shared_mask(self, data): + result = data + 1 + assert not tm.shares_memory(result, data) + + def test_array(self, comparison_op, dtype): + op = comparison_op + + left = pd.array([0, 1, 2, None, None, None], dtype=dtype) + right = pd.array([0, 1, None, 0, 1, None], dtype=dtype) + + result = op(left, right) + values = op(left._data, right._data) + mask = left._mask | right._mask + + expected = pd.arrays.BooleanArray(values, mask) + tm.assert_extension_array_equal(result, expected) + + # ensure we haven't mutated anything inplace + result[0] = pd.NA + tm.assert_extension_array_equal( + left, pd.array([0, 1, 2, None, None, None], dtype=dtype) + ) + tm.assert_extension_array_equal( + right, pd.array([0, 1, None, 0, 1, None], dtype=dtype) + ) + + def test_compare_with_booleanarray(self, comparison_op, dtype): + op = comparison_op + + left = pd.array([True, False, None] * 3, dtype="boolean") + right = pd.array([0] * 3 + [1] * 3 + [None] * 3, dtype=dtype) + other = pd.array([False] * 3 + [True] * 3 + [None] * 3, dtype="boolean") + + expected = op(left, other) + result = op(left, right) + tm.assert_extension_array_equal(result, expected) + + # reversed op + expected = op(other, left) + result = op(right, left) + tm.assert_extension_array_equal(result, expected) + + def test_compare_to_string(self, dtype): + # GH#28930 + ser = pd.Series([1, None], dtype=dtype) + result = ser == "a" + expected = pd.Series([False, pd.NA], dtype="boolean") + + tm.assert_series_equal(result, expected) + + def test_ufunc_with_out(self, dtype): + arr = pd.array([1, 2, 3], dtype=dtype) + arr2 = pd.array([1, 2, pd.NA], dtype=dtype) + + mask = arr == arr + mask2 = arr2 == arr2 + + result = np.zeros(3, dtype=bool) + result |= mask + # If MaskedArray.__array_ufunc__ handled "out" appropriately, + # `result` should still be an ndarray. + assert isinstance(result, np.ndarray) + assert result.all() + + # result |= mask worked because mask could be cast losslessly to + # boolean ndarray. mask2 can't, so this raises + result = np.zeros(3, dtype=bool) + msg = "Specify an appropriate 'na_value' for this dtype" + with pytest.raises(ValueError, match=msg): + result |= mask2 + + # addition + res = np.add(arr, arr2) + expected = pd.array([2, 4, pd.NA], dtype=dtype) + tm.assert_extension_array_equal(res, expected) + + # when passing out=arr, we will modify 'arr' inplace. + res = np.add(arr, arr2, out=arr) + assert res is arr + tm.assert_extension_array_equal(res, expected) + tm.assert_extension_array_equal(arr, expected) + + def test_mul_td64_array(self, dtype): + # GH#45622 + arr = pd.array([1, 2, pd.NA], dtype=dtype) + other = np.arange(3, dtype=np.int64).view("m8[ns]") + + result = arr * other + expected = pd.array([pd.Timedelta(0), pd.Timedelta(2), pd.NaT]) + tm.assert_extension_array_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/numpy_/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/numpy_/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/numpy_/test_indexing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/numpy_/test_indexing.py new file mode 100644 index 0000000000000000000000000000000000000000..225d64ad7d2580f877505f0ac3a459e2ea4f0f53 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/numpy_/test_indexing.py @@ -0,0 +1,41 @@ +import numpy as np + +from pandas.core.dtypes.common import is_scalar + +import pandas as pd +import pandas._testing as tm + + +class TestSearchsorted: + def test_searchsorted_string(self, string_dtype): + arr = pd.array(["a", "b", "c"], dtype=string_dtype) + + result = arr.searchsorted("a", side="left") + assert is_scalar(result) + assert result == 0 + + result = arr.searchsorted("a", side="right") + assert is_scalar(result) + assert result == 1 + + def test_searchsorted_numeric_dtypes_scalar(self, any_real_numpy_dtype): + arr = pd.array([1, 3, 90], dtype=any_real_numpy_dtype) + result = arr.searchsorted(30) + assert is_scalar(result) + assert result == 2 + + result = arr.searchsorted([30]) + expected = np.array([2], dtype=np.intp) + tm.assert_numpy_array_equal(result, expected) + + def test_searchsorted_numeric_dtypes_vector(self, any_real_numpy_dtype): + arr = pd.array([1, 3, 90], dtype=any_real_numpy_dtype) + result = arr.searchsorted([2, 30]) + expected = np.array([1, 2], dtype=np.intp) + tm.assert_numpy_array_equal(result, expected) + + def test_searchsorted_sorter(self, any_real_numpy_dtype): + arr = pd.array([3, 1, 2], dtype=any_real_numpy_dtype) + result = arr.searchsorted([0, 3], sorter=np.argsort(arr)) + expected = np.array([0, 2], dtype=np.intp) + tm.assert_numpy_array_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/numpy_/test_numpy.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/numpy_/test_numpy.py new file mode 100644 index 0000000000000000000000000000000000000000..f21fb4ccfba075acf2771ac5c9d1056aa50274bd --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/numpy_/test_numpy.py @@ -0,0 +1,351 @@ +""" +Additional tests for NumpyExtensionArray that aren't covered by +the interface tests. +""" +import numpy as np +import pytest + +from pandas.core.dtypes.dtypes import NumpyEADtype + +import pandas as pd +import pandas._testing as tm +from pandas.arrays import NumpyExtensionArray + + +@pytest.fixture( + params=[ + np.array(["a", "b"], dtype=object), + np.array([0, 1], dtype=float), + np.array([0, 1], dtype=int), + np.array([0, 1 + 2j], dtype=complex), + np.array([True, False], dtype=bool), + np.array([0, 1], dtype="datetime64[ns]"), + np.array([0, 1], dtype="timedelta64[ns]"), + ], +) +def any_numpy_array(request): + """ + Parametrized fixture for NumPy arrays with different dtypes. + + This excludes string and bytes. + """ + return request.param.copy() + + +# ---------------------------------------------------------------------------- +# NumpyEADtype + + +@pytest.mark.parametrize( + "dtype, expected", + [ + ("bool", True), + ("int", True), + ("uint", True), + ("float", True), + ("complex", True), + ("str", False), + ("bytes", False), + ("datetime64[ns]", False), + ("object", False), + ("void", False), + ], +) +def test_is_numeric(dtype, expected): + dtype = NumpyEADtype(dtype) + assert dtype._is_numeric is expected + + +@pytest.mark.parametrize( + "dtype, expected", + [ + ("bool", True), + ("int", False), + ("uint", False), + ("float", False), + ("complex", False), + ("str", False), + ("bytes", False), + ("datetime64[ns]", False), + ("object", False), + ("void", False), + ], +) +def test_is_boolean(dtype, expected): + dtype = NumpyEADtype(dtype) + assert dtype._is_boolean is expected + + +def test_repr(): + dtype = NumpyEADtype(np.dtype("int64")) + assert repr(dtype) == "NumpyEADtype('int64')" + + +def test_constructor_from_string(): + result = NumpyEADtype.construct_from_string("int64") + expected = NumpyEADtype(np.dtype("int64")) + assert result == expected + + +def test_dtype_idempotent(any_numpy_dtype): + dtype = NumpyEADtype(any_numpy_dtype) + + result = NumpyEADtype(dtype) + assert result == dtype + + +# ---------------------------------------------------------------------------- +# Construction + + +def test_constructor_no_coercion(): + with pytest.raises(ValueError, match="NumPy array"): + NumpyExtensionArray([1, 2, 3]) + + +def test_series_constructor_with_copy(): + ndarray = np.array([1, 2, 3]) + ser = pd.Series(NumpyExtensionArray(ndarray), copy=True) + + assert ser.values is not ndarray + + +def test_series_constructor_with_astype(): + ndarray = np.array([1, 2, 3]) + result = pd.Series(NumpyExtensionArray(ndarray), dtype="float64") + expected = pd.Series([1.0, 2.0, 3.0], dtype="float64") + tm.assert_series_equal(result, expected) + + +def test_from_sequence_dtype(): + arr = np.array([1, 2, 3], dtype="int64") + result = NumpyExtensionArray._from_sequence(arr, dtype="uint64") + expected = NumpyExtensionArray(np.array([1, 2, 3], dtype="uint64")) + tm.assert_extension_array_equal(result, expected) + + +def test_constructor_copy(): + arr = np.array([0, 1]) + result = NumpyExtensionArray(arr, copy=True) + + assert not tm.shares_memory(result, arr) + + +def test_constructor_with_data(any_numpy_array): + nparr = any_numpy_array + arr = NumpyExtensionArray(nparr) + assert arr.dtype.numpy_dtype == nparr.dtype + + +# ---------------------------------------------------------------------------- +# Conversion + + +def test_to_numpy(): + arr = NumpyExtensionArray(np.array([1, 2, 3])) + result = arr.to_numpy() + assert result is arr._ndarray + + result = arr.to_numpy(copy=True) + assert result is not arr._ndarray + + result = arr.to_numpy(dtype="f8") + expected = np.array([1, 2, 3], dtype="f8") + tm.assert_numpy_array_equal(result, expected) + + +# ---------------------------------------------------------------------------- +# Setitem + + +def test_setitem_series(): + ser = pd.Series([1, 2, 3]) + ser.array[0] = 10 + expected = pd.Series([10, 2, 3]) + tm.assert_series_equal(ser, expected) + + +def test_setitem(any_numpy_array): + nparr = any_numpy_array + arr = NumpyExtensionArray(nparr, copy=True) + + arr[0] = arr[1] + nparr[0] = nparr[1] + + tm.assert_numpy_array_equal(arr.to_numpy(), nparr) + + +# ---------------------------------------------------------------------------- +# Reductions + + +def test_bad_reduce_raises(): + arr = np.array([1, 2, 3], dtype="int64") + arr = NumpyExtensionArray(arr) + msg = "cannot perform not_a_method with type int" + with pytest.raises(TypeError, match=msg): + arr._reduce(msg) + + +def test_validate_reduction_keyword_args(): + arr = NumpyExtensionArray(np.array([1, 2, 3])) + msg = "the 'keepdims' parameter is not supported .*all" + with pytest.raises(ValueError, match=msg): + arr.all(keepdims=True) + + +def test_np_max_nested_tuples(): + # case where checking in ufunc.nout works while checking for tuples + # does not + vals = [ + (("j", "k"), ("l", "m")), + (("l", "m"), ("o", "p")), + (("o", "p"), ("j", "k")), + ] + ser = pd.Series(vals) + arr = ser.array + + assert arr.max() is arr[2] + assert ser.max() is arr[2] + + result = np.maximum.reduce(arr) + assert result == arr[2] + + result = np.maximum.reduce(ser) + assert result == arr[2] + + +def test_np_reduce_2d(): + raw = np.arange(12).reshape(4, 3) + arr = NumpyExtensionArray(raw) + + res = np.maximum.reduce(arr, axis=0) + tm.assert_extension_array_equal(res, arr[-1]) + + alt = arr.max(axis=0) + tm.assert_extension_array_equal(alt, arr[-1]) + + +# ---------------------------------------------------------------------------- +# Ops + + +@pytest.mark.parametrize("ufunc", [np.abs, np.negative, np.positive]) +def test_ufunc_unary(ufunc): + arr = NumpyExtensionArray(np.array([-1.0, 0.0, 1.0])) + result = ufunc(arr) + expected = NumpyExtensionArray(ufunc(arr._ndarray)) + tm.assert_extension_array_equal(result, expected) + + # same thing but with the 'out' keyword + out = NumpyExtensionArray(np.array([-9.0, -9.0, -9.0])) + ufunc(arr, out=out) + tm.assert_extension_array_equal(out, expected) + + +def test_ufunc(): + arr = NumpyExtensionArray(np.array([-1.0, 0.0, 1.0])) + + r1, r2 = np.divmod(arr, np.add(arr, 2)) + e1, e2 = np.divmod(arr._ndarray, np.add(arr._ndarray, 2)) + e1 = NumpyExtensionArray(e1) + e2 = NumpyExtensionArray(e2) + tm.assert_extension_array_equal(r1, e1) + tm.assert_extension_array_equal(r2, e2) + + +def test_basic_binop(): + # Just a basic smoke test. The EA interface tests exercise this + # more thoroughly. + x = NumpyExtensionArray(np.array([1, 2, 3])) + result = x + x + expected = NumpyExtensionArray(np.array([2, 4, 6])) + tm.assert_extension_array_equal(result, expected) + + +@pytest.mark.parametrize("dtype", [None, object]) +def test_setitem_object_typecode(dtype): + arr = NumpyExtensionArray(np.array(["a", "b", "c"], dtype=dtype)) + arr[0] = "t" + expected = NumpyExtensionArray(np.array(["t", "b", "c"], dtype=dtype)) + tm.assert_extension_array_equal(arr, expected) + + +def test_setitem_no_coercion(): + # https://github.com/pandas-dev/pandas/issues/28150 + arr = NumpyExtensionArray(np.array([1, 2, 3])) + with pytest.raises(ValueError, match="int"): + arr[0] = "a" + + # With a value that we do coerce, check that we coerce the value + # and not the underlying array. + arr[0] = 2.5 + assert isinstance(arr[0], (int, np.integer)), type(arr[0]) + + +def test_setitem_preserves_views(): + # GH#28150, see also extension test of the same name + arr = NumpyExtensionArray(np.array([1, 2, 3])) + view1 = arr.view() + view2 = arr[:] + view3 = np.asarray(arr) + + arr[0] = 9 + assert view1[0] == 9 + assert view2[0] == 9 + assert view3[0] == 9 + + arr[-1] = 2.5 + view1[-1] = 5 + assert arr[-1] == 5 + + +@pytest.mark.parametrize("dtype", [np.int64, np.uint64]) +def test_quantile_empty(dtype): + # we should get back np.nans, not -1s + arr = NumpyExtensionArray(np.array([], dtype=dtype)) + idx = pd.Index([0.0, 0.5]) + + result = arr._quantile(idx, interpolation="linear") + expected = NumpyExtensionArray(np.array([np.nan, np.nan])) + tm.assert_extension_array_equal(result, expected) + + +def test_factorize_unsigned(): + # don't raise when calling factorize on unsigned int NumpyExtensionArray + arr = np.array([1, 2, 3], dtype=np.uint64) + obj = NumpyExtensionArray(arr) + + res_codes, res_unique = obj.factorize() + exp_codes, exp_unique = pd.factorize(arr) + + tm.assert_numpy_array_equal(res_codes, exp_codes) + + tm.assert_extension_array_equal(res_unique, NumpyExtensionArray(exp_unique)) + + +# ---------------------------------------------------------------------------- +# Output formatting + + +def test_array_repr(any_numpy_array): + # GH#61085 + nparray = any_numpy_array + arr = NumpyExtensionArray(nparray) + if nparray.dtype == "object": + values = "['a', 'b']" + elif nparray.dtype == "float64": + values = "[0.0, 1.0]" + elif str(nparray.dtype).startswith("int"): + values = "[0, 1]" + elif nparray.dtype == "complex128": + values = "[0j, (1+2j)]" + elif nparray.dtype == "bool": + values = "[True, False]" + elif nparray.dtype == "datetime64[ns]": + values = "[1970-01-01T00:00:00.000000000, 1970-01-01T00:00:00.000000001]" + elif nparray.dtype == "timedelta64[ns]": + values = "[0 nanoseconds, 1 nanoseconds]" + expected = f"\n{values}\nLength: 2, dtype: {nparray.dtype}" + result = repr(arr) + assert result == expected, f"{result} vs {expected}" diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/period/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/period/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/period/test_arrow_compat.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/period/test_arrow_compat.py new file mode 100644 index 0000000000000000000000000000000000000000..431309aca0df21dbe885ae015b10c3c21f0134a2 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/period/test_arrow_compat.py @@ -0,0 +1,130 @@ +import pytest + +from pandas.compat.pyarrow import pa_version_under10p1 + +from pandas.core.dtypes.dtypes import PeriodDtype + +import pandas as pd +import pandas._testing as tm +from pandas.core.arrays import ( + PeriodArray, + period_array, +) + +pytestmark = pytest.mark.filterwarnings( + "ignore:Passing a BlockManager to DataFrame:DeprecationWarning" +) + + +pa = pytest.importorskip("pyarrow") + + +def test_arrow_extension_type(): + from pandas.core.arrays.arrow.extension_types import ArrowPeriodType + + p1 = ArrowPeriodType("D") + p2 = ArrowPeriodType("D") + p3 = ArrowPeriodType("M") + + assert p1.freq == "D" + assert p1 == p2 + assert p1 != p3 + assert hash(p1) == hash(p2) + assert hash(p1) != hash(p3) + + +@pytest.mark.xfail(not pa_version_under10p1, reason="Wrong behavior with pyarrow 10") +@pytest.mark.parametrize( + "data, freq", + [ + (pd.date_range("2017", periods=3), "D"), + (pd.date_range("2017", periods=3, freq="YE"), "Y-DEC"), + ], +) +def test_arrow_array(data, freq): + from pandas.core.arrays.arrow.extension_types import ArrowPeriodType + + periods = period_array(data, freq=freq) + result = pa.array(periods) + assert isinstance(result.type, ArrowPeriodType) + assert result.type.freq == freq + expected = pa.array(periods.asi8, type="int64") + assert result.storage.equals(expected) + + # convert to its storage type + result = pa.array(periods, type=pa.int64()) + assert result.equals(expected) + + # unsupported conversions + msg = "Not supported to convert PeriodArray to 'double' type" + with pytest.raises(TypeError, match=msg): + pa.array(periods, type="float64") + + with pytest.raises(TypeError, match="different 'freq'"): + pa.array(periods, type=ArrowPeriodType("T")) + + +def test_arrow_array_missing(): + from pandas.core.arrays.arrow.extension_types import ArrowPeriodType + + arr = PeriodArray([1, 2, 3], dtype="period[D]") + arr[1] = pd.NaT + + result = pa.array(arr) + assert isinstance(result.type, ArrowPeriodType) + assert result.type.freq == "D" + expected = pa.array([1, None, 3], type="int64") + assert result.storage.equals(expected) + + +def test_arrow_table_roundtrip(): + from pandas.core.arrays.arrow.extension_types import ArrowPeriodType + + arr = PeriodArray([1, 2, 3], dtype="period[D]") + arr[1] = pd.NaT + df = pd.DataFrame({"a": arr}) + + table = pa.table(df) + assert isinstance(table.field("a").type, ArrowPeriodType) + result = table.to_pandas() + assert isinstance(result["a"].dtype, PeriodDtype) + tm.assert_frame_equal(result, df) + + table2 = pa.concat_tables([table, table]) + result = table2.to_pandas() + expected = pd.concat([df, df], ignore_index=True) + tm.assert_frame_equal(result, expected) + + +def test_arrow_load_from_zero_chunks(): + # GH-41040 + + from pandas.core.arrays.arrow.extension_types import ArrowPeriodType + + arr = PeriodArray([], dtype="period[D]") + df = pd.DataFrame({"a": arr}) + + table = pa.table(df) + assert isinstance(table.field("a").type, ArrowPeriodType) + table = pa.table( + [pa.chunked_array([], type=table.column(0).type)], schema=table.schema + ) + + result = table.to_pandas() + assert isinstance(result["a"].dtype, PeriodDtype) + tm.assert_frame_equal(result, df) + + +def test_arrow_table_roundtrip_without_metadata(): + arr = PeriodArray([1, 2, 3], dtype="period[h]") + arr[1] = pd.NaT + df = pd.DataFrame({"a": arr}) + + table = pa.table(df) + # remove the metadata + table = table.replace_schema_metadata() + assert table.schema.metadata is None + + result = table.to_pandas() + assert isinstance(result["a"].dtype, PeriodDtype) + tm.assert_frame_equal(result, df) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/period/test_astype.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/period/test_astype.py new file mode 100644 index 0000000000000000000000000000000000000000..9976c3a32580da0b5b237eaa2b839b2337363f51 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/period/test_astype.py @@ -0,0 +1,67 @@ +import numpy as np +import pytest + +from pandas.core.dtypes.dtypes import PeriodDtype + +import pandas as pd +import pandas._testing as tm +from pandas.core.arrays import period_array + + +@pytest.mark.parametrize("dtype", [int, np.int32, np.int64, "uint32", "uint64"]) +def test_astype_int(dtype): + # We choose to ignore the sign and size of integers for + # Period/Datetime/Timedelta astype + arr = period_array(["2000", "2001", None], freq="D") + + if np.dtype(dtype) != np.int64: + with pytest.raises(TypeError, match=r"Do obj.astype\('int64'\)"): + arr.astype(dtype) + return + + result = arr.astype(dtype) + expected = arr._ndarray.view("i8") + tm.assert_numpy_array_equal(result, expected) + + +def test_astype_copies(): + arr = period_array(["2000", "2001", None], freq="D") + result = arr.astype(np.int64, copy=False) + + # Add the `.base`, since we now use `.asi8` which returns a view. + # We could maybe override it in PeriodArray to return ._ndarray directly. + assert result.base is arr._ndarray + + result = arr.astype(np.int64, copy=True) + assert result is not arr._ndarray + tm.assert_numpy_array_equal(result, arr._ndarray.view("i8")) + + +def test_astype_categorical(): + arr = period_array(["2000", "2001", "2001", None], freq="D") + result = arr.astype("category") + categories = pd.PeriodIndex(["2000", "2001"], freq="D") + expected = pd.Categorical.from_codes([0, 1, 1, -1], categories=categories) + tm.assert_categorical_equal(result, expected) + + +def test_astype_period(): + arr = period_array(["2000", "2001", None], freq="D") + result = arr.astype(PeriodDtype("M")) + expected = period_array(["2000", "2001", None], freq="M") + tm.assert_period_array_equal(result, expected) + + +@pytest.mark.parametrize("dtype", ["datetime64[ns]", "timedelta64[ns]"]) +def test_astype_datetime(dtype): + arr = period_array(["2000", "2001", None], freq="D") + # slice off the [ns] so that the regex matches. + if dtype == "timedelta64[ns]": + with pytest.raises(TypeError, match=dtype[:-4]): + arr.astype(dtype) + + else: + # GH#45038 allow period->dt64 because we allow dt64->period + result = arr.astype(dtype) + expected = pd.DatetimeIndex(["2000", "2001", pd.NaT], dtype=dtype)._data + tm.assert_datetime_array_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/period/test_constructors.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/period/test_constructors.py new file mode 100644 index 0000000000000000000000000000000000000000..d034162f1b46e11bd06204de7707c7343fd9b1b2 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/period/test_constructors.py @@ -0,0 +1,156 @@ +import numpy as np +import pytest + +from pandas._libs.tslibs import iNaT +from pandas._libs.tslibs.offsets import MonthEnd +from pandas._libs.tslibs.period import IncompatibleFrequency + +import pandas as pd +import pandas._testing as tm +from pandas.core.arrays import ( + PeriodArray, + period_array, +) + + +@pytest.mark.parametrize( + "data, freq, expected", + [ + ([pd.Period("2017", "D")], None, [17167]), + ([pd.Period("2017", "D")], "D", [17167]), + ([2017], "D", [17167]), + (["2017"], "D", [17167]), + ([pd.Period("2017", "D")], pd.tseries.offsets.Day(), [17167]), + ([pd.Period("2017", "D"), None], None, [17167, iNaT]), + (pd.Series(pd.date_range("2017", periods=3)), None, [17167, 17168, 17169]), + (pd.date_range("2017", periods=3), None, [17167, 17168, 17169]), + (pd.period_range("2017", periods=4, freq="Q"), None, [188, 189, 190, 191]), + ], +) +def test_period_array_ok(data, freq, expected): + result = period_array(data, freq=freq).asi8 + expected = np.asarray(expected, dtype=np.int64) + tm.assert_numpy_array_equal(result, expected) + + +def test_period_array_readonly_object(): + # https://github.com/pandas-dev/pandas/issues/25403 + pa = period_array([pd.Period("2019-01-01")]) + arr = np.asarray(pa, dtype="object") + arr.setflags(write=False) + + result = period_array(arr) + tm.assert_period_array_equal(result, pa) + + result = pd.Series(arr) + tm.assert_series_equal(result, pd.Series(pa)) + + result = pd.DataFrame({"A": arr}) + tm.assert_frame_equal(result, pd.DataFrame({"A": pa})) + + +def test_from_datetime64_freq_changes(): + # https://github.com/pandas-dev/pandas/issues/23438 + arr = pd.date_range("2017", periods=3, freq="D") + result = PeriodArray._from_datetime64(arr, freq="M") + expected = period_array(["2017-01-01", "2017-01-01", "2017-01-01"], freq="M") + tm.assert_period_array_equal(result, expected) + + +@pytest.mark.parametrize("freq", ["2M", MonthEnd(2)]) +def test_from_datetime64_freq_2M(freq): + arr = np.array( + ["2020-01-01T00:00:00", "2020-01-02T00:00:00"], dtype="datetime64[ns]" + ) + result = PeriodArray._from_datetime64(arr, freq) + expected = period_array(["2020-01", "2020-01"], freq=freq) + tm.assert_period_array_equal(result, expected) + + +@pytest.mark.parametrize( + "data, freq, msg", + [ + ( + [pd.Period("2017", "D"), pd.Period("2017", "Y")], + None, + "Input has different freq", + ), + ([pd.Period("2017", "D")], "Y", "Input has different freq"), + ], +) +def test_period_array_raises(data, freq, msg): + with pytest.raises(IncompatibleFrequency, match=msg): + period_array(data, freq) + + +def test_period_array_non_period_series_raies(): + ser = pd.Series([1, 2, 3]) + with pytest.raises(TypeError, match="dtype"): + PeriodArray(ser, dtype="period[D]") + + +def test_period_array_freq_mismatch(): + arr = period_array(["2000", "2001"], freq="D") + with pytest.raises(IncompatibleFrequency, match="freq"): + PeriodArray(arr, dtype="period[M]") + + dtype = pd.PeriodDtype(pd.tseries.offsets.MonthEnd()) + with pytest.raises(IncompatibleFrequency, match="freq"): + PeriodArray(arr, dtype=dtype) + + +def test_from_sequence_disallows_i8(): + arr = period_array(["2000", "2001"], freq="D") + + msg = str(arr[0].ordinal) + with pytest.raises(TypeError, match=msg): + PeriodArray._from_sequence(arr.asi8, dtype=arr.dtype) + + with pytest.raises(TypeError, match=msg): + PeriodArray._from_sequence(list(arr.asi8), dtype=arr.dtype) + + +def test_from_td64nat_sequence_raises(): + # GH#44507 + td = pd.NaT.to_numpy("m8[ns]") + + dtype = pd.period_range("2005-01-01", periods=3, freq="D").dtype + + arr = np.array([None], dtype=object) + arr[0] = td + + msg = "Value must be Period, string, integer, or datetime" + with pytest.raises(ValueError, match=msg): + PeriodArray._from_sequence(arr, dtype=dtype) + + with pytest.raises(ValueError, match=msg): + pd.PeriodIndex(arr, dtype=dtype) + with pytest.raises(ValueError, match=msg): + pd.Index(arr, dtype=dtype) + with pytest.raises(ValueError, match=msg): + pd.array(arr, dtype=dtype) + with pytest.raises(ValueError, match=msg): + pd.Series(arr, dtype=dtype) + with pytest.raises(ValueError, match=msg): + pd.DataFrame(arr, dtype=dtype) + + +def test_freq_deprecated(): + # GH#52462 + data = np.arange(5).astype(np.int64) + msg = "The 'freq' keyword in the PeriodArray constructor is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + res = PeriodArray(data, freq="M") + + expected = PeriodArray(data, dtype="period[M]") + tm.assert_equal(res, expected) + + +def test_period_array_from_datetime64(): + arr = np.array( + ["2020-01-01T00:00:00", "2020-02-02T00:00:00"], dtype="datetime64[ns]" + ) + result = PeriodArray._from_datetime64(arr, freq=MonthEnd(2)) + + expected = period_array(["2020-01-01", "2020-02-01"], freq=MonthEnd(2)) + tm.assert_period_array_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/period/test_reductions.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/period/test_reductions.py new file mode 100644 index 0000000000000000000000000000000000000000..2889cc786dd71583ca345ad206553907af3a13fa --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/period/test_reductions.py @@ -0,0 +1,42 @@ +import pytest + +import pandas as pd +from pandas.core.arrays import period_array + + +class TestReductions: + def test_min_max(self): + arr = period_array( + [ + "2000-01-03", + "2000-01-03", + "NaT", + "2000-01-02", + "2000-01-05", + "2000-01-04", + ], + freq="D", + ) + + result = arr.min() + expected = pd.Period("2000-01-02", freq="D") + assert result == expected + + result = arr.max() + expected = pd.Period("2000-01-05", freq="D") + assert result == expected + + result = arr.min(skipna=False) + assert result is pd.NaT + + result = arr.max(skipna=False) + assert result is pd.NaT + + @pytest.mark.parametrize("skipna", [True, False]) + def test_min_max_empty(self, skipna): + arr = period_array([], freq="D") + result = arr.min(skipna=skipna) + assert result is pd.NaT + + result = arr.max(skipna=skipna) + assert result is pd.NaT diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_accessor.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_accessor.py new file mode 100644 index 0000000000000000000000000000000000000000..87eb7bcfa9cee3e92386ad0f148b896c0e682b07 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_accessor.py @@ -0,0 +1,253 @@ +import string + +import numpy as np +import pytest + +import pandas as pd +from pandas import SparseDtype +import pandas._testing as tm +from pandas.core.arrays.sparse import SparseArray + + +class TestSeriesAccessor: + def test_to_dense(self): + ser = pd.Series([0, 1, 0, 10], dtype="Sparse[int64]") + result = ser.sparse.to_dense() + expected = pd.Series([0, 1, 0, 10]) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("attr", ["npoints", "density", "fill_value", "sp_values"]) + def test_get_attributes(self, attr): + arr = SparseArray([0, 1]) + ser = pd.Series(arr) + + result = getattr(ser.sparse, attr) + expected = getattr(arr, attr) + assert result == expected + + def test_from_coo(self): + scipy_sparse = pytest.importorskip("scipy.sparse") + + row = [0, 3, 1, 0] + col = [0, 3, 1, 2] + data = [4, 5, 7, 9] + + sp_array = scipy_sparse.coo_matrix((data, (row, col))) + result = pd.Series.sparse.from_coo(sp_array) + + index = pd.MultiIndex.from_arrays( + [ + np.array([0, 0, 1, 3], dtype=np.int32), + np.array([0, 2, 1, 3], dtype=np.int32), + ], + ) + expected = pd.Series([4, 9, 7, 5], index=index, dtype="Sparse[int]") + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize( + "sort_labels, expected_rows, expected_cols, expected_values_pos", + [ + ( + False, + [("b", 2), ("a", 2), ("b", 1), ("a", 1)], + [("z", 1), ("z", 2), ("x", 2), ("z", 0)], + {1: (1, 0), 3: (3, 3)}, + ), + ( + True, + [("a", 1), ("a", 2), ("b", 1), ("b", 2)], + [("x", 2), ("z", 0), ("z", 1), ("z", 2)], + {1: (1, 2), 3: (0, 1)}, + ), + ], + ) + def test_to_coo( + self, sort_labels, expected_rows, expected_cols, expected_values_pos + ): + sp_sparse = pytest.importorskip("scipy.sparse") + + values = SparseArray([0, np.nan, 1, 0, None, 3], fill_value=0) + index = pd.MultiIndex.from_tuples( + [ + ("b", 2, "z", 1), + ("a", 2, "z", 2), + ("a", 2, "z", 1), + ("a", 2, "x", 2), + ("b", 1, "z", 1), + ("a", 1, "z", 0), + ] + ) + ss = pd.Series(values, index=index) + + expected_A = np.zeros((4, 4)) + for value, (row, col) in expected_values_pos.items(): + expected_A[row, col] = value + + A, rows, cols = ss.sparse.to_coo( + row_levels=(0, 1), column_levels=(2, 3), sort_labels=sort_labels + ) + assert isinstance(A, sp_sparse.coo_matrix) + tm.assert_numpy_array_equal(A.toarray(), expected_A) + assert rows == expected_rows + assert cols == expected_cols + + def test_non_sparse_raises(self): + ser = pd.Series([1, 2, 3]) + with pytest.raises(AttributeError, match=".sparse"): + ser.sparse.density + + +class TestFrameAccessor: + def test_accessor_raises(self): + df = pd.DataFrame({"A": [0, 1]}) + with pytest.raises(AttributeError, match="sparse"): + df.sparse + + @pytest.mark.parametrize("format", ["csc", "csr", "coo"]) + @pytest.mark.parametrize("labels", [None, list(string.ascii_letters[:10])]) + @pytest.mark.parametrize("dtype", ["float64", "int64"]) + def test_from_spmatrix(self, format, labels, dtype): + sp_sparse = pytest.importorskip("scipy.sparse") + + sp_dtype = SparseDtype(dtype, np.array(0, dtype=dtype).item()) + + mat = sp_sparse.eye(10, format=format, dtype=dtype) + result = pd.DataFrame.sparse.from_spmatrix(mat, index=labels, columns=labels) + expected = pd.DataFrame( + np.eye(10, dtype=dtype), index=labels, columns=labels + ).astype(sp_dtype) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("format", ["csc", "csr", "coo"]) + def test_from_spmatrix_including_explicit_zero(self, format): + sp_sparse = pytest.importorskip("scipy.sparse") + + mat = sp_sparse.random(10, 2, density=0.5, format=format) + mat.data[0] = 0 + result = pd.DataFrame.sparse.from_spmatrix(mat) + dtype = SparseDtype("float64", 0.0) + expected = pd.DataFrame(mat.todense()).astype(dtype) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "columns", + [["a", "b"], pd.MultiIndex.from_product([["A"], ["a", "b"]]), ["a", "a"]], + ) + def test_from_spmatrix_columns(self, columns): + sp_sparse = pytest.importorskip("scipy.sparse") + + dtype = SparseDtype("float64", 0.0) + + mat = sp_sparse.random(10, 2, density=0.5) + result = pd.DataFrame.sparse.from_spmatrix(mat, columns=columns) + expected = pd.DataFrame(mat.toarray(), columns=columns).astype(dtype) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "colnames", [("A", "B"), (1, 2), (1, pd.NA), (0.1, 0.2), ("x", "x"), (0, 0)] + ) + def test_to_coo(self, colnames): + sp_sparse = pytest.importorskip("scipy.sparse") + + df = pd.DataFrame( + {colnames[0]: [0, 1, 0], colnames[1]: [1, 0, 0]}, dtype="Sparse[int64, 0]" + ) + result = df.sparse.to_coo() + expected = sp_sparse.coo_matrix(np.asarray(df)) + assert (result != expected).nnz == 0 + + @pytest.mark.parametrize("fill_value", [1, np.nan]) + def test_to_coo_nonzero_fill_val_raises(self, fill_value): + pytest.importorskip("scipy") + df = pd.DataFrame( + { + "A": SparseArray( + [fill_value, fill_value, fill_value, 2], fill_value=fill_value + ), + "B": SparseArray( + [fill_value, 2, fill_value, fill_value], fill_value=fill_value + ), + } + ) + with pytest.raises(ValueError, match="fill value must be 0"): + df.sparse.to_coo() + + def test_to_coo_midx_categorical(self): + # GH#50996 + sp_sparse = pytest.importorskip("scipy.sparse") + + midx = pd.MultiIndex.from_arrays( + [ + pd.CategoricalIndex(list("ab"), name="x"), + pd.CategoricalIndex([0, 1], name="y"), + ] + ) + + ser = pd.Series(1, index=midx, dtype="Sparse[int]") + result = ser.sparse.to_coo(row_levels=["x"], column_levels=["y"])[0] + expected = sp_sparse.coo_matrix( + (np.array([1, 1]), (np.array([0, 1]), np.array([0, 1]))), shape=(2, 2) + ) + assert (result != expected).nnz == 0 + + def test_to_dense(self): + df = pd.DataFrame( + { + "A": SparseArray([1, 0], dtype=SparseDtype("int64", 0)), + "B": SparseArray([1, 0], dtype=SparseDtype("int64", 1)), + "C": SparseArray([1.0, 0.0], dtype=SparseDtype("float64", 0.0)), + }, + index=["b", "a"], + ) + result = df.sparse.to_dense() + expected = pd.DataFrame( + {"A": [1, 0], "B": [1, 0], "C": [1.0, 0.0]}, index=["b", "a"] + ) + tm.assert_frame_equal(result, expected) + + def test_density(self): + df = pd.DataFrame( + { + "A": SparseArray([1, 0, 2, 1], fill_value=0), + "B": SparseArray([0, 1, 1, 1], fill_value=0), + } + ) + res = df.sparse.density + expected = 0.75 + assert res == expected + + @pytest.mark.parametrize("dtype", ["int64", "float64"]) + @pytest.mark.parametrize("dense_index", [True, False]) + def test_series_from_coo(self, dtype, dense_index): + sp_sparse = pytest.importorskip("scipy.sparse") + + A = sp_sparse.eye(3, format="coo", dtype=dtype) + result = pd.Series.sparse.from_coo(A, dense_index=dense_index) + + index = pd.MultiIndex.from_tuples( + [ + np.array([0, 0], dtype=np.int32), + np.array([1, 1], dtype=np.int32), + np.array([2, 2], dtype=np.int32), + ], + ) + expected = pd.Series(SparseArray(np.array([1, 1, 1], dtype=dtype)), index=index) + if dense_index: + expected = expected.reindex(pd.MultiIndex.from_product(index.levels)) + + tm.assert_series_equal(result, expected) + + def test_series_from_coo_incorrect_format_raises(self): + # gh-26554 + sp_sparse = pytest.importorskip("scipy.sparse") + + m = sp_sparse.csr_matrix(np.array([[0, 1], [0, 0]])) + with pytest.raises( + TypeError, match="Expected coo_matrix. Got csr_matrix instead." + ): + pd.Series.sparse.from_coo(m) + + def test_with_column_named_sparse(self): + # https://github.com/pandas-dev/pandas/issues/30758 + df = pd.DataFrame({"sparse": pd.arrays.SparseArray([1, 2])}) + assert isinstance(df.sparse, pd.core.arrays.sparse.accessor.SparseFrameAccessor) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_arithmetics.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_arithmetics.py new file mode 100644 index 0000000000000000000000000000000000000000..ffc93b4e4f176385ac7b2b8a0b51027cb0bad9f6 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_arithmetics.py @@ -0,0 +1,514 @@ +import operator + +import numpy as np +import pytest + +import pandas as pd +from pandas import SparseDtype +import pandas._testing as tm +from pandas.core.arrays.sparse import SparseArray + + +@pytest.fixture(params=["integer", "block"]) +def kind(request): + """kind kwarg to pass to SparseArray""" + return request.param + + +@pytest.fixture(params=[True, False]) +def mix(request): + """ + Fixture returning True or False, determining whether to operate + op(sparse, dense) instead of op(sparse, sparse) + """ + return request.param + + +class TestSparseArrayArithmetics: + def _assert(self, a, b): + # We have to use tm.assert_sp_array_equal. See GH #45126 + tm.assert_numpy_array_equal(a, b) + + def _check_numeric_ops(self, a, b, a_dense, b_dense, mix: bool, op): + # Check that arithmetic behavior matches non-Sparse Series arithmetic + + if isinstance(a_dense, np.ndarray): + expected = op(pd.Series(a_dense), b_dense).values + elif isinstance(b_dense, np.ndarray): + expected = op(a_dense, pd.Series(b_dense)).values + else: + raise NotImplementedError + + with np.errstate(invalid="ignore", divide="ignore"): + if mix: + result = op(a, b_dense).to_dense() + else: + result = op(a, b).to_dense() + + self._assert(result, expected) + + def _check_bool_result(self, res): + assert isinstance(res, SparseArray) + assert isinstance(res.dtype, SparseDtype) + assert res.dtype.subtype == np.bool_ + assert isinstance(res.fill_value, bool) + + def _check_comparison_ops(self, a, b, a_dense, b_dense): + with np.errstate(invalid="ignore"): + # Unfortunately, trying to wrap the computation of each expected + # value is with np.errstate() is too tedious. + # + # sparse & sparse + self._check_bool_result(a == b) + self._assert((a == b).to_dense(), a_dense == b_dense) + + self._check_bool_result(a != b) + self._assert((a != b).to_dense(), a_dense != b_dense) + + self._check_bool_result(a >= b) + self._assert((a >= b).to_dense(), a_dense >= b_dense) + + self._check_bool_result(a <= b) + self._assert((a <= b).to_dense(), a_dense <= b_dense) + + self._check_bool_result(a > b) + self._assert((a > b).to_dense(), a_dense > b_dense) + + self._check_bool_result(a < b) + self._assert((a < b).to_dense(), a_dense < b_dense) + + # sparse & dense + self._check_bool_result(a == b_dense) + self._assert((a == b_dense).to_dense(), a_dense == b_dense) + + self._check_bool_result(a != b_dense) + self._assert((a != b_dense).to_dense(), a_dense != b_dense) + + self._check_bool_result(a >= b_dense) + self._assert((a >= b_dense).to_dense(), a_dense >= b_dense) + + self._check_bool_result(a <= b_dense) + self._assert((a <= b_dense).to_dense(), a_dense <= b_dense) + + self._check_bool_result(a > b_dense) + self._assert((a > b_dense).to_dense(), a_dense > b_dense) + + self._check_bool_result(a < b_dense) + self._assert((a < b_dense).to_dense(), a_dense < b_dense) + + def _check_logical_ops(self, a, b, a_dense, b_dense): + # sparse & sparse + self._check_bool_result(a & b) + self._assert((a & b).to_dense(), a_dense & b_dense) + + self._check_bool_result(a | b) + self._assert((a | b).to_dense(), a_dense | b_dense) + # sparse & dense + self._check_bool_result(a & b_dense) + self._assert((a & b_dense).to_dense(), a_dense & b_dense) + + self._check_bool_result(a | b_dense) + self._assert((a | b_dense).to_dense(), a_dense | b_dense) + + @pytest.mark.parametrize("scalar", [0, 1, 3]) + @pytest.mark.parametrize("fill_value", [None, 0, 2]) + def test_float_scalar( + self, kind, mix, all_arithmetic_functions, fill_value, scalar, request + ): + op = all_arithmetic_functions + values = np.array([np.nan, 1, 2, 0, np.nan, 0, 1, 2, 1, np.nan]) + a = SparseArray(values, kind=kind, fill_value=fill_value) + self._check_numeric_ops(a, scalar, values, scalar, mix, op) + + def test_float_scalar_comparison(self, kind): + values = np.array([np.nan, 1, 2, 0, np.nan, 0, 1, 2, 1, np.nan]) + + a = SparseArray(values, kind=kind) + self._check_comparison_ops(a, 1, values, 1) + self._check_comparison_ops(a, 0, values, 0) + self._check_comparison_ops(a, 3, values, 3) + + a = SparseArray(values, kind=kind, fill_value=0) + self._check_comparison_ops(a, 1, values, 1) + self._check_comparison_ops(a, 0, values, 0) + self._check_comparison_ops(a, 3, values, 3) + + a = SparseArray(values, kind=kind, fill_value=2) + self._check_comparison_ops(a, 1, values, 1) + self._check_comparison_ops(a, 0, values, 0) + self._check_comparison_ops(a, 3, values, 3) + + def test_float_same_index_without_nans(self, kind, mix, all_arithmetic_functions): + # when sp_index are the same + op = all_arithmetic_functions + + values = np.array([0.0, 1.0, 2.0, 6.0, 0.0, 0.0, 1.0, 2.0, 1.0, 0.0]) + rvalues = np.array([0.0, 2.0, 3.0, 4.0, 0.0, 0.0, 1.0, 3.0, 2.0, 0.0]) + + a = SparseArray(values, kind=kind, fill_value=0) + b = SparseArray(rvalues, kind=kind, fill_value=0) + self._check_numeric_ops(a, b, values, rvalues, mix, op) + + def test_float_same_index_with_nans( + self, kind, mix, all_arithmetic_functions, request + ): + # when sp_index are the same + op = all_arithmetic_functions + values = np.array([np.nan, 1, 2, 0, np.nan, 0, 1, 2, 1, np.nan]) + rvalues = np.array([np.nan, 2, 3, 4, np.nan, 0, 1, 3, 2, np.nan]) + + a = SparseArray(values, kind=kind) + b = SparseArray(rvalues, kind=kind) + self._check_numeric_ops(a, b, values, rvalues, mix, op) + + def test_float_same_index_comparison(self, kind): + # when sp_index are the same + values = np.array([np.nan, 1, 2, 0, np.nan, 0, 1, 2, 1, np.nan]) + rvalues = np.array([np.nan, 2, 3, 4, np.nan, 0, 1, 3, 2, np.nan]) + + a = SparseArray(values, kind=kind) + b = SparseArray(rvalues, kind=kind) + self._check_comparison_ops(a, b, values, rvalues) + + values = np.array([0.0, 1.0, 2.0, 6.0, 0.0, 0.0, 1.0, 2.0, 1.0, 0.0]) + rvalues = np.array([0.0, 2.0, 3.0, 4.0, 0.0, 0.0, 1.0, 3.0, 2.0, 0.0]) + + a = SparseArray(values, kind=kind, fill_value=0) + b = SparseArray(rvalues, kind=kind, fill_value=0) + self._check_comparison_ops(a, b, values, rvalues) + + def test_float_array(self, kind, mix, all_arithmetic_functions): + op = all_arithmetic_functions + + values = np.array([np.nan, 1, 2, 0, np.nan, 0, 1, 2, 1, np.nan]) + rvalues = np.array([2, np.nan, 2, 3, np.nan, 0, 1, 5, 2, np.nan]) + + a = SparseArray(values, kind=kind) + b = SparseArray(rvalues, kind=kind) + self._check_numeric_ops(a, b, values, rvalues, mix, op) + self._check_numeric_ops(a, b * 0, values, rvalues * 0, mix, op) + + a = SparseArray(values, kind=kind, fill_value=0) + b = SparseArray(rvalues, kind=kind) + self._check_numeric_ops(a, b, values, rvalues, mix, op) + + a = SparseArray(values, kind=kind, fill_value=0) + b = SparseArray(rvalues, kind=kind, fill_value=0) + self._check_numeric_ops(a, b, values, rvalues, mix, op) + + a = SparseArray(values, kind=kind, fill_value=1) + b = SparseArray(rvalues, kind=kind, fill_value=2) + self._check_numeric_ops(a, b, values, rvalues, mix, op) + + def test_float_array_different_kind(self, mix, all_arithmetic_functions): + op = all_arithmetic_functions + + values = np.array([np.nan, 1, 2, 0, np.nan, 0, 1, 2, 1, np.nan]) + rvalues = np.array([2, np.nan, 2, 3, np.nan, 0, 1, 5, 2, np.nan]) + + a = SparseArray(values, kind="integer") + b = SparseArray(rvalues, kind="block") + self._check_numeric_ops(a, b, values, rvalues, mix, op) + self._check_numeric_ops(a, b * 0, values, rvalues * 0, mix, op) + + a = SparseArray(values, kind="integer", fill_value=0) + b = SparseArray(rvalues, kind="block") + self._check_numeric_ops(a, b, values, rvalues, mix, op) + + a = SparseArray(values, kind="integer", fill_value=0) + b = SparseArray(rvalues, kind="block", fill_value=0) + self._check_numeric_ops(a, b, values, rvalues, mix, op) + + a = SparseArray(values, kind="integer", fill_value=1) + b = SparseArray(rvalues, kind="block", fill_value=2) + self._check_numeric_ops(a, b, values, rvalues, mix, op) + + def test_float_array_comparison(self, kind): + values = np.array([np.nan, 1, 2, 0, np.nan, 0, 1, 2, 1, np.nan]) + rvalues = np.array([2, np.nan, 2, 3, np.nan, 0, 1, 5, 2, np.nan]) + + a = SparseArray(values, kind=kind) + b = SparseArray(rvalues, kind=kind) + self._check_comparison_ops(a, b, values, rvalues) + self._check_comparison_ops(a, b * 0, values, rvalues * 0) + + a = SparseArray(values, kind=kind, fill_value=0) + b = SparseArray(rvalues, kind=kind) + self._check_comparison_ops(a, b, values, rvalues) + + a = SparseArray(values, kind=kind, fill_value=0) + b = SparseArray(rvalues, kind=kind, fill_value=0) + self._check_comparison_ops(a, b, values, rvalues) + + a = SparseArray(values, kind=kind, fill_value=1) + b = SparseArray(rvalues, kind=kind, fill_value=2) + self._check_comparison_ops(a, b, values, rvalues) + + def test_int_array(self, kind, mix, all_arithmetic_functions): + op = all_arithmetic_functions + + # have to specify dtype explicitly until fixing GH 667 + dtype = np.int64 + + values = np.array([0, 1, 2, 0, 0, 0, 1, 2, 1, 0], dtype=dtype) + rvalues = np.array([2, 0, 2, 3, 0, 0, 1, 5, 2, 0], dtype=dtype) + + a = SparseArray(values, dtype=dtype, kind=kind) + assert a.dtype == SparseDtype(dtype) + b = SparseArray(rvalues, dtype=dtype, kind=kind) + assert b.dtype == SparseDtype(dtype) + + self._check_numeric_ops(a, b, values, rvalues, mix, op) + self._check_numeric_ops(a, b * 0, values, rvalues * 0, mix, op) + + a = SparseArray(values, fill_value=0, dtype=dtype, kind=kind) + assert a.dtype == SparseDtype(dtype) + b = SparseArray(rvalues, dtype=dtype, kind=kind) + assert b.dtype == SparseDtype(dtype) + + self._check_numeric_ops(a, b, values, rvalues, mix, op) + + a = SparseArray(values, fill_value=0, dtype=dtype, kind=kind) + assert a.dtype == SparseDtype(dtype) + b = SparseArray(rvalues, fill_value=0, dtype=dtype, kind=kind) + assert b.dtype == SparseDtype(dtype) + self._check_numeric_ops(a, b, values, rvalues, mix, op) + + a = SparseArray(values, fill_value=1, dtype=dtype, kind=kind) + assert a.dtype == SparseDtype(dtype, fill_value=1) + b = SparseArray(rvalues, fill_value=2, dtype=dtype, kind=kind) + assert b.dtype == SparseDtype(dtype, fill_value=2) + self._check_numeric_ops(a, b, values, rvalues, mix, op) + + def test_int_array_comparison(self, kind): + dtype = "int64" + # int32 NI ATM + + values = np.array([0, 1, 2, 0, 0, 0, 1, 2, 1, 0], dtype=dtype) + rvalues = np.array([2, 0, 2, 3, 0, 0, 1, 5, 2, 0], dtype=dtype) + + a = SparseArray(values, dtype=dtype, kind=kind) + b = SparseArray(rvalues, dtype=dtype, kind=kind) + self._check_comparison_ops(a, b, values, rvalues) + self._check_comparison_ops(a, b * 0, values, rvalues * 0) + + a = SparseArray(values, dtype=dtype, kind=kind, fill_value=0) + b = SparseArray(rvalues, dtype=dtype, kind=kind) + self._check_comparison_ops(a, b, values, rvalues) + + a = SparseArray(values, dtype=dtype, kind=kind, fill_value=0) + b = SparseArray(rvalues, dtype=dtype, kind=kind, fill_value=0) + self._check_comparison_ops(a, b, values, rvalues) + + a = SparseArray(values, dtype=dtype, kind=kind, fill_value=1) + b = SparseArray(rvalues, dtype=dtype, kind=kind, fill_value=2) + self._check_comparison_ops(a, b, values, rvalues) + + @pytest.mark.parametrize("fill_value", [True, False, np.nan]) + def test_bool_same_index(self, kind, fill_value): + # GH 14000 + # when sp_index are the same + values = np.array([True, False, True, True], dtype=np.bool_) + rvalues = np.array([True, False, True, True], dtype=np.bool_) + + a = SparseArray(values, kind=kind, dtype=np.bool_, fill_value=fill_value) + b = SparseArray(rvalues, kind=kind, dtype=np.bool_, fill_value=fill_value) + self._check_logical_ops(a, b, values, rvalues) + + @pytest.mark.parametrize("fill_value", [True, False, np.nan]) + def test_bool_array_logical(self, kind, fill_value): + # GH 14000 + # when sp_index are the same + values = np.array([True, False, True, False, True, True], dtype=np.bool_) + rvalues = np.array([True, False, False, True, False, True], dtype=np.bool_) + + a = SparseArray(values, kind=kind, dtype=np.bool_, fill_value=fill_value) + b = SparseArray(rvalues, kind=kind, dtype=np.bool_, fill_value=fill_value) + self._check_logical_ops(a, b, values, rvalues) + + def test_mixed_array_float_int(self, kind, mix, all_arithmetic_functions, request): + op = all_arithmetic_functions + rdtype = "int64" + values = np.array([np.nan, 1, 2, 0, np.nan, 0, 1, 2, 1, np.nan]) + rvalues = np.array([2, 0, 2, 3, 0, 0, 1, 5, 2, 0], dtype=rdtype) + + a = SparseArray(values, kind=kind) + b = SparseArray(rvalues, kind=kind) + assert b.dtype == SparseDtype(rdtype) + + self._check_numeric_ops(a, b, values, rvalues, mix, op) + self._check_numeric_ops(a, b * 0, values, rvalues * 0, mix, op) + + a = SparseArray(values, kind=kind, fill_value=0) + b = SparseArray(rvalues, kind=kind) + assert b.dtype == SparseDtype(rdtype) + self._check_numeric_ops(a, b, values, rvalues, mix, op) + + a = SparseArray(values, kind=kind, fill_value=0) + b = SparseArray(rvalues, kind=kind, fill_value=0) + assert b.dtype == SparseDtype(rdtype) + self._check_numeric_ops(a, b, values, rvalues, mix, op) + + a = SparseArray(values, kind=kind, fill_value=1) + b = SparseArray(rvalues, kind=kind, fill_value=2) + assert b.dtype == SparseDtype(rdtype, fill_value=2) + self._check_numeric_ops(a, b, values, rvalues, mix, op) + + def test_mixed_array_comparison(self, kind): + rdtype = "int64" + # int32 NI ATM + + values = np.array([np.nan, 1, 2, 0, np.nan, 0, 1, 2, 1, np.nan]) + rvalues = np.array([2, 0, 2, 3, 0, 0, 1, 5, 2, 0], dtype=rdtype) + + a = SparseArray(values, kind=kind) + b = SparseArray(rvalues, kind=kind) + assert b.dtype == SparseDtype(rdtype) + + self._check_comparison_ops(a, b, values, rvalues) + self._check_comparison_ops(a, b * 0, values, rvalues * 0) + + a = SparseArray(values, kind=kind, fill_value=0) + b = SparseArray(rvalues, kind=kind) + assert b.dtype == SparseDtype(rdtype) + self._check_comparison_ops(a, b, values, rvalues) + + a = SparseArray(values, kind=kind, fill_value=0) + b = SparseArray(rvalues, kind=kind, fill_value=0) + assert b.dtype == SparseDtype(rdtype) + self._check_comparison_ops(a, b, values, rvalues) + + a = SparseArray(values, kind=kind, fill_value=1) + b = SparseArray(rvalues, kind=kind, fill_value=2) + assert b.dtype == SparseDtype(rdtype, fill_value=2) + self._check_comparison_ops(a, b, values, rvalues) + + def test_xor(self): + s = SparseArray([True, True, False, False]) + t = SparseArray([True, False, True, False]) + result = s ^ t + sp_index = pd.core.arrays.sparse.IntIndex(4, np.array([0, 1, 2], dtype="int32")) + expected = SparseArray([False, True, True], sparse_index=sp_index) + tm.assert_sp_array_equal(result, expected) + + +@pytest.mark.parametrize("op", [operator.eq, operator.add]) +def test_with_list(op): + arr = SparseArray([0, 1], fill_value=0) + result = op(arr, [0, 1]) + expected = op(arr, SparseArray([0, 1])) + tm.assert_sp_array_equal(result, expected) + + +def test_with_dataframe(): + # GH#27910 + arr = SparseArray([0, 1], fill_value=0) + df = pd.DataFrame([[1, 2], [3, 4]]) + result = arr.__add__(df) + assert result is NotImplemented + + +def test_with_zerodim_ndarray(): + # GH#27910 + arr = SparseArray([0, 1], fill_value=0) + + result = arr * np.array(2) + expected = arr * 2 + tm.assert_sp_array_equal(result, expected) + + +@pytest.mark.parametrize("ufunc", [np.abs, np.exp]) +@pytest.mark.parametrize( + "arr", [SparseArray([0, 0, -1, 1]), SparseArray([None, None, -1, 1])] +) +def test_ufuncs(ufunc, arr): + result = ufunc(arr) + fill_value = ufunc(arr.fill_value) + expected = SparseArray(ufunc(np.asarray(arr)), fill_value=fill_value) + tm.assert_sp_array_equal(result, expected) + + +@pytest.mark.parametrize( + "a, b", + [ + (SparseArray([0, 0, 0]), np.array([0, 1, 2])), + (SparseArray([0, 0, 0], fill_value=1), np.array([0, 1, 2])), + (SparseArray([0, 0, 0], fill_value=1), np.array([0, 1, 2])), + (SparseArray([0, 0, 0], fill_value=1), np.array([0, 1, 2])), + (SparseArray([0, 0, 0], fill_value=1), np.array([0, 1, 2])), + ], +) +@pytest.mark.parametrize("ufunc", [np.add, np.greater]) +def test_binary_ufuncs(ufunc, a, b): + # can't say anything about fill value here. + result = ufunc(a, b) + expected = ufunc(np.asarray(a), np.asarray(b)) + assert isinstance(result, SparseArray) + tm.assert_numpy_array_equal(np.asarray(result), expected) + + +def test_ndarray_inplace(): + sparray = SparseArray([0, 2, 0, 0]) + ndarray = np.array([0, 1, 2, 3]) + ndarray += sparray + expected = np.array([0, 3, 2, 3]) + tm.assert_numpy_array_equal(ndarray, expected) + + +def test_sparray_inplace(): + sparray = SparseArray([0, 2, 0, 0]) + ndarray = np.array([0, 1, 2, 3]) + sparray += ndarray + expected = SparseArray([0, 3, 2, 3], fill_value=0) + tm.assert_sp_array_equal(sparray, expected) + + +@pytest.mark.parametrize("cons", [list, np.array, SparseArray]) +def test_mismatched_length_cmp_op(cons): + left = SparseArray([True, True]) + right = cons([True, True, True]) + with pytest.raises(ValueError, match="operands have mismatched length"): + left & right + + +@pytest.mark.parametrize("op", ["add", "sub", "mul", "truediv", "floordiv", "pow"]) +@pytest.mark.parametrize("fill_value", [np.nan, 3]) +def test_binary_operators(op, fill_value): + op = getattr(operator, op) + data1 = np.random.default_rng(2).standard_normal(20) + data2 = np.random.default_rng(2).standard_normal(20) + + data1[::2] = fill_value + data2[::3] = fill_value + + first = SparseArray(data1, fill_value=fill_value) + second = SparseArray(data2, fill_value=fill_value) + + with np.errstate(all="ignore"): + res = op(first, second) + exp = SparseArray( + op(first.to_dense(), second.to_dense()), fill_value=first.fill_value + ) + assert isinstance(res, SparseArray) + tm.assert_almost_equal(res.to_dense(), exp.to_dense()) + + res2 = op(first, second.to_dense()) + assert isinstance(res2, SparseArray) + tm.assert_sp_array_equal(res, res2) + + res3 = op(first.to_dense(), second) + assert isinstance(res3, SparseArray) + tm.assert_sp_array_equal(res, res3) + + res4 = op(first, 4) + assert isinstance(res4, SparseArray) + + # Ignore this if the actual op raises (e.g. pow). + try: + exp = op(first.to_dense(), 4) + exp_fv = op(first.fill_value, 4) + except ValueError: + pass + else: + tm.assert_almost_equal(res4.fill_value, exp_fv) + tm.assert_almost_equal(res4.to_dense(), exp) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_array.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_array.py new file mode 100644 index 0000000000000000000000000000000000000000..b2a570b14df3c980a6fe5f32773bf4e8ed02da60 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_array.py @@ -0,0 +1,511 @@ +import re + +import numpy as np +import pytest + +from pandas._libs.sparse import IntIndex +from pandas.compat.numpy import np_version_gt2 + +import pandas as pd +from pandas import ( + SparseDtype, + isna, +) +import pandas._testing as tm +from pandas.core.arrays.sparse import SparseArray + + +@pytest.fixture +def arr_data(): + """Fixture returning numpy array with valid and missing entries""" + return np.array([np.nan, np.nan, 1, 2, 3, np.nan, 4, 5, np.nan, 6]) + + +@pytest.fixture +def arr(arr_data): + """Fixture returning SparseArray from 'arr_data'""" + return SparseArray(arr_data) + + +@pytest.fixture +def zarr(): + """Fixture returning SparseArray with integer entries and 'fill_value=0'""" + return SparseArray([0, 0, 1, 2, 3, 0, 4, 5, 0, 6], fill_value=0) + + +class TestSparseArray: + @pytest.mark.parametrize("fill_value", [0, None, np.nan]) + def test_shift_fill_value(self, fill_value): + # GH #24128 + sparse = SparseArray(np.array([1, 0, 0, 3, 0]), fill_value=8.0) + res = sparse.shift(1, fill_value=fill_value) + if isna(fill_value): + fill_value = res.dtype.na_value + exp = SparseArray(np.array([fill_value, 1, 0, 0, 3]), fill_value=8.0) + tm.assert_sp_array_equal(res, exp) + + def test_set_fill_value(self): + arr = SparseArray([1.0, np.nan, 2.0], fill_value=np.nan) + arr.fill_value = 2 + assert arr.fill_value == 2 + + arr = SparseArray([1, 0, 2], fill_value=0, dtype=np.int64) + arr.fill_value = 2 + assert arr.fill_value == 2 + + msg = "Allowing arbitrary scalar fill_value in SparseDtype is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + arr.fill_value = 3.1 + assert arr.fill_value == 3.1 + + arr.fill_value = np.nan + assert np.isnan(arr.fill_value) + + arr = SparseArray([True, False, True], fill_value=False, dtype=np.bool_) + arr.fill_value = True + assert arr.fill_value is True + + with tm.assert_produces_warning(FutureWarning, match=msg): + arr.fill_value = 0 + + arr.fill_value = np.nan + assert np.isnan(arr.fill_value) + + @pytest.mark.parametrize("val", [[1, 2, 3], np.array([1, 2]), (1, 2, 3)]) + def test_set_fill_invalid_non_scalar(self, val): + arr = SparseArray([True, False, True], fill_value=False, dtype=np.bool_) + msg = "fill_value must be a scalar" + + with pytest.raises(ValueError, match=msg): + arr.fill_value = val + + def test_copy(self, arr): + arr2 = arr.copy() + assert arr2.sp_values is not arr.sp_values + assert arr2.sp_index is arr.sp_index + + def test_values_asarray(self, arr_data, arr): + tm.assert_almost_equal(arr.to_dense(), arr_data) + + @pytest.mark.parametrize( + "data,shape,dtype", + [ + ([0, 0, 0, 0, 0], (5,), None), + ([], (0,), None), + ([0], (1,), None), + (["A", "A", np.nan, "B"], (4,), object), + ], + ) + def test_shape(self, data, shape, dtype): + # GH 21126 + out = SparseArray(data, dtype=dtype) + assert out.shape == shape + + @pytest.mark.parametrize( + "vals", + [ + [np.nan, np.nan, np.nan, np.nan, np.nan], + [1, np.nan, np.nan, 3, np.nan], + [1, np.nan, 0, 3, 0], + ], + ) + @pytest.mark.parametrize("fill_value", [None, 0]) + def test_dense_repr(self, vals, fill_value): + vals = np.array(vals) + arr = SparseArray(vals, fill_value=fill_value) + + res = arr.to_dense() + tm.assert_numpy_array_equal(res, vals) + + @pytest.mark.parametrize("fix", ["arr", "zarr"]) + def test_pickle(self, fix, request): + obj = request.getfixturevalue(fix) + unpickled = tm.round_trip_pickle(obj) + tm.assert_sp_array_equal(unpickled, obj) + + def test_generator_warnings(self): + sp_arr = SparseArray([1, 2, 3]) + with tm.assert_produces_warning(None): + for _ in sp_arr: + pass + + def test_where_retain_fill_value(self): + # GH#45691 don't lose fill_value on _where + arr = SparseArray([np.nan, 1.0], fill_value=0) + + mask = np.array([True, False]) + + res = arr._where(~mask, 1) + exp = SparseArray([1, 1.0], fill_value=0) + tm.assert_sp_array_equal(res, exp) + + ser = pd.Series(arr) + res = ser.where(~mask, 1) + tm.assert_series_equal(res, pd.Series(exp)) + + def test_fillna(self): + s = SparseArray([1, np.nan, np.nan, 3, np.nan]) + res = s.fillna(-1) + exp = SparseArray([1, -1, -1, 3, -1], fill_value=-1, dtype=np.float64) + tm.assert_sp_array_equal(res, exp) + + s = SparseArray([1, np.nan, np.nan, 3, np.nan], fill_value=0) + res = s.fillna(-1) + exp = SparseArray([1, -1, -1, 3, -1], fill_value=0, dtype=np.float64) + tm.assert_sp_array_equal(res, exp) + + s = SparseArray([1, np.nan, 0, 3, 0]) + res = s.fillna(-1) + exp = SparseArray([1, -1, 0, 3, 0], fill_value=-1, dtype=np.float64) + tm.assert_sp_array_equal(res, exp) + + s = SparseArray([1, np.nan, 0, 3, 0], fill_value=0) + res = s.fillna(-1) + exp = SparseArray([1, -1, 0, 3, 0], fill_value=0, dtype=np.float64) + tm.assert_sp_array_equal(res, exp) + + s = SparseArray([np.nan, np.nan, np.nan, np.nan]) + res = s.fillna(-1) + exp = SparseArray([-1, -1, -1, -1], fill_value=-1, dtype=np.float64) + tm.assert_sp_array_equal(res, exp) + + s = SparseArray([np.nan, np.nan, np.nan, np.nan], fill_value=0) + res = s.fillna(-1) + exp = SparseArray([-1, -1, -1, -1], fill_value=0, dtype=np.float64) + tm.assert_sp_array_equal(res, exp) + + # float dtype's fill_value is np.nan, replaced by -1 + s = SparseArray([0.0, 0.0, 0.0, 0.0]) + res = s.fillna(-1) + exp = SparseArray([0.0, 0.0, 0.0, 0.0], fill_value=-1) + tm.assert_sp_array_equal(res, exp) + + # int dtype shouldn't have missing. No changes. + s = SparseArray([0, 0, 0, 0]) + assert s.dtype == SparseDtype(np.int64) + assert s.fill_value == 0 + res = s.fillna(-1) + tm.assert_sp_array_equal(res, s) + + s = SparseArray([0, 0, 0, 0], fill_value=0) + assert s.dtype == SparseDtype(np.int64) + assert s.fill_value == 0 + res = s.fillna(-1) + exp = SparseArray([0, 0, 0, 0], fill_value=0) + tm.assert_sp_array_equal(res, exp) + + # fill_value can be nan if there is no missing hole. + # only fill_value will be changed + s = SparseArray([0, 0, 0, 0], fill_value=np.nan) + assert s.dtype == SparseDtype(np.int64, fill_value=np.nan) + assert np.isnan(s.fill_value) + res = s.fillna(-1) + exp = SparseArray([0, 0, 0, 0], fill_value=-1) + tm.assert_sp_array_equal(res, exp) + + def test_fillna_overlap(self): + s = SparseArray([1, np.nan, np.nan, 3, np.nan]) + # filling with existing value doesn't replace existing value with + # fill_value, i.e. existing 3 remains in sp_values + res = s.fillna(3) + exp = np.array([1, 3, 3, 3, 3], dtype=np.float64) + tm.assert_numpy_array_equal(res.to_dense(), exp) + + s = SparseArray([1, np.nan, np.nan, 3, np.nan], fill_value=0) + res = s.fillna(3) + exp = SparseArray([1, 3, 3, 3, 3], fill_value=0, dtype=np.float64) + tm.assert_sp_array_equal(res, exp) + + def test_nonzero(self): + # Tests regression #21172. + sa = SparseArray([float("nan"), float("nan"), 1, 0, 0, 2, 0, 0, 0, 3, 0, 0]) + expected = np.array([2, 5, 9], dtype=np.int32) + (result,) = sa.nonzero() + tm.assert_numpy_array_equal(expected, result) + + sa = SparseArray([0, 0, 1, 0, 0, 2, 0, 0, 0, 3, 0, 0]) + (result,) = sa.nonzero() + tm.assert_numpy_array_equal(expected, result) + + +class TestSparseArrayAnalytics: + @pytest.mark.parametrize( + "data,expected", + [ + ( + np.array([1, 2, 3, 4, 5], dtype=float), # non-null data + SparseArray(np.array([1.0, 3.0, 6.0, 10.0, 15.0])), + ), + ( + np.array([1, 2, np.nan, 4, 5], dtype=float), # null data + SparseArray(np.array([1.0, 3.0, np.nan, 7.0, 12.0])), + ), + ], + ) + @pytest.mark.parametrize("numpy", [True, False]) + def test_cumsum(self, data, expected, numpy): + cumsum = np.cumsum if numpy else lambda s: s.cumsum() + + out = cumsum(SparseArray(data)) + tm.assert_sp_array_equal(out, expected) + + out = cumsum(SparseArray(data, fill_value=np.nan)) + tm.assert_sp_array_equal(out, expected) + + out = cumsum(SparseArray(data, fill_value=2)) + tm.assert_sp_array_equal(out, expected) + + if numpy: # numpy compatibility checks. + msg = "the 'dtype' parameter is not supported" + with pytest.raises(ValueError, match=msg): + np.cumsum(SparseArray(data), dtype=np.int64) + + msg = "the 'out' parameter is not supported" + with pytest.raises(ValueError, match=msg): + np.cumsum(SparseArray(data), out=out) + else: + axis = 1 # SparseArray currently 1-D, so only axis = 0 is valid. + msg = re.escape(f"axis(={axis}) out of bounds") + with pytest.raises(ValueError, match=msg): + SparseArray(data).cumsum(axis=axis) + + def test_ufunc(self): + # GH 13853 make sure ufunc is applied to fill_value + sparse = SparseArray([1, np.nan, 2, np.nan, -2]) + result = SparseArray([1, np.nan, 2, np.nan, 2]) + tm.assert_sp_array_equal(abs(sparse), result) + tm.assert_sp_array_equal(np.abs(sparse), result) + + sparse = SparseArray([1, -1, 2, -2], fill_value=1) + result = SparseArray([1, 2, 2], sparse_index=sparse.sp_index, fill_value=1) + tm.assert_sp_array_equal(abs(sparse), result) + tm.assert_sp_array_equal(np.abs(sparse), result) + + sparse = SparseArray([1, -1, 2, -2], fill_value=-1) + exp = SparseArray([1, 1, 2, 2], fill_value=1) + tm.assert_sp_array_equal(abs(sparse), exp) + tm.assert_sp_array_equal(np.abs(sparse), exp) + + sparse = SparseArray([1, np.nan, 2, np.nan, -2]) + result = SparseArray(np.sin([1, np.nan, 2, np.nan, -2])) + tm.assert_sp_array_equal(np.sin(sparse), result) + + sparse = SparseArray([1, -1, 2, -2], fill_value=1) + result = SparseArray(np.sin([1, -1, 2, -2]), fill_value=np.sin(1)) + tm.assert_sp_array_equal(np.sin(sparse), result) + + sparse = SparseArray([1, -1, 0, -2], fill_value=0) + result = SparseArray(np.sin([1, -1, 0, -2]), fill_value=np.sin(0)) + tm.assert_sp_array_equal(np.sin(sparse), result) + + def test_ufunc_args(self): + # GH 13853 make sure ufunc is applied to fill_value, including its arg + sparse = SparseArray([1, np.nan, 2, np.nan, -2]) + result = SparseArray([2, np.nan, 3, np.nan, -1]) + tm.assert_sp_array_equal(np.add(sparse, 1), result) + + sparse = SparseArray([1, -1, 2, -2], fill_value=1) + result = SparseArray([2, 0, 3, -1], fill_value=2) + tm.assert_sp_array_equal(np.add(sparse, 1), result) + + sparse = SparseArray([1, -1, 0, -2], fill_value=0) + result = SparseArray([2, 0, 1, -1], fill_value=1) + tm.assert_sp_array_equal(np.add(sparse, 1), result) + + @pytest.mark.parametrize("fill_value", [0.0, np.nan]) + def test_modf(self, fill_value): + # https://github.com/pandas-dev/pandas/issues/26946 + sparse = SparseArray([fill_value] * 10 + [1.1, 2.2], fill_value=fill_value) + r1, r2 = np.modf(sparse) + e1, e2 = np.modf(np.asarray(sparse)) + tm.assert_sp_array_equal(r1, SparseArray(e1, fill_value=fill_value)) + tm.assert_sp_array_equal(r2, SparseArray(e2, fill_value=fill_value)) + + def test_nbytes_integer(self): + arr = SparseArray([1, 0, 0, 0, 2], kind="integer") + result = arr.nbytes + # (2 * 8) + 2 * 4 + assert result == 24 + + def test_nbytes_block(self): + arr = SparseArray([1, 2, 0, 0, 0], kind="block") + result = arr.nbytes + # (2 * 8) + 4 + 4 + # sp_values, blocs, blengths + assert result == 24 + + def test_asarray_datetime64(self): + s = SparseArray(pd.to_datetime(["2012", None, None, "2013"])) + np.asarray(s) + + def test_density(self): + arr = SparseArray([0, 1]) + assert arr.density == 0.5 + + def test_npoints(self): + arr = SparseArray([0, 1]) + assert arr.npoints == 1 + + +def test_setting_fill_value_fillna_still_works(): + # This is why letting users update fill_value / dtype is bad + # astype has the same problem. + arr = SparseArray([1.0, np.nan, 1.0], fill_value=0.0) + arr.fill_value = np.nan + result = arr.isna() + # Can't do direct comparison, since the sp_index will be different + # So let's convert to ndarray and check there. + result = np.asarray(result) + + expected = np.array([False, True, False]) + tm.assert_numpy_array_equal(result, expected) + + +def test_setting_fill_value_updates(): + arr = SparseArray([0.0, np.nan], fill_value=0) + arr.fill_value = np.nan + # use private constructor to get the index right + # otherwise both nans would be un-stored. + expected = SparseArray._simple_new( + sparse_array=np.array([np.nan]), + sparse_index=IntIndex(2, [1]), + dtype=SparseDtype(float, np.nan), + ) + tm.assert_sp_array_equal(arr, expected) + + +@pytest.mark.parametrize( + "arr,fill_value,loc", + [ + ([None, 1, 2], None, 0), + ([0, None, 2], None, 1), + ([0, 1, None], None, 2), + ([0, 1, 1, None, None], None, 3), + ([1, 1, 1, 2], None, -1), + ([], None, -1), + ([None, 1, 0, 0, None, 2], None, 0), + ([None, 1, 0, 0, None, 2], 1, 1), + ([None, 1, 0, 0, None, 2], 2, 5), + ([None, 1, 0, 0, None, 2], 3, -1), + ([None, 0, 0, 1, 2, 1], 0, 1), + ([None, 0, 0, 1, 2, 1], 1, 3), + ], +) +def test_first_fill_value_loc(arr, fill_value, loc): + result = SparseArray(arr, fill_value=fill_value)._first_fill_value_loc() + assert result == loc + + +@pytest.mark.parametrize( + "arr", + [ + [1, 2, np.nan, np.nan], + [1, np.nan, 2, np.nan], + [1, 2, np.nan], + [np.nan, 1, 0, 0, np.nan, 2], + [np.nan, 0, 0, 1, 2, 1], + ], +) +@pytest.mark.parametrize("fill_value", [np.nan, 0, 1]) +def test_unique_na_fill(arr, fill_value): + a = SparseArray(arr, fill_value=fill_value).unique() + b = pd.Series(arr).unique() + assert isinstance(a, SparseArray) + a = np.asarray(a) + tm.assert_numpy_array_equal(a, b) + + +def test_unique_all_sparse(): + # https://github.com/pandas-dev/pandas/issues/23168 + arr = SparseArray([0, 0]) + result = arr.unique() + expected = SparseArray([0]) + tm.assert_sp_array_equal(result, expected) + + +def test_map(): + arr = SparseArray([0, 1, 2]) + expected = SparseArray([10, 11, 12], fill_value=10) + + # dict + result = arr.map({0: 10, 1: 11, 2: 12}) + tm.assert_sp_array_equal(result, expected) + + # series + result = arr.map(pd.Series({0: 10, 1: 11, 2: 12})) + tm.assert_sp_array_equal(result, expected) + + # function + result = arr.map(pd.Series({0: 10, 1: 11, 2: 12})) + expected = SparseArray([10, 11, 12], fill_value=10) + tm.assert_sp_array_equal(result, expected) + + +def test_map_missing(): + arr = SparseArray([0, 1, 2]) + expected = SparseArray([10, 11, None], fill_value=10) + + result = arr.map({0: 10, 1: 11}) + tm.assert_sp_array_equal(result, expected) + + +@pytest.mark.parametrize("fill_value", [np.nan, 1]) +def test_dropna(fill_value): + # GH-28287 + arr = SparseArray([np.nan, 1], fill_value=fill_value) + exp = SparseArray([1.0], fill_value=fill_value) + tm.assert_sp_array_equal(arr.dropna(), exp) + + df = pd.DataFrame({"a": [0, 1], "b": arr}) + expected_df = pd.DataFrame({"a": [1], "b": exp}, index=pd.Index([1])) + tm.assert_equal(df.dropna(), expected_df) + + +def test_drop_duplicates_fill_value(): + # GH 11726 + df = pd.DataFrame(np.zeros((5, 5))).apply(lambda x: SparseArray(x, fill_value=0)) + result = df.drop_duplicates() + expected = pd.DataFrame({i: SparseArray([0.0], fill_value=0) for i in range(5)}) + tm.assert_frame_equal(result, expected) + + +def test_zero_sparse_column(): + # GH 27781 + df1 = pd.DataFrame({"A": SparseArray([0, 0, 0]), "B": [1, 2, 3]}) + df2 = pd.DataFrame({"A": SparseArray([0, 1, 0]), "B": [1, 2, 3]}) + result = df1.loc[df1["B"] != 2] + expected = df2.loc[df2["B"] != 2] + tm.assert_frame_equal(result, expected) + + expected = pd.DataFrame({"A": SparseArray([0, 0]), "B": [1, 3]}, index=[0, 2]) + tm.assert_frame_equal(result, expected) + + +def test_array_interface(arr_data, arr): + # https://github.com/pandas-dev/pandas/pull/60046 + result = np.asarray(arr) + tm.assert_numpy_array_equal(result, arr_data) + + # it always gives a copy by default + result_copy1 = np.asarray(arr) + result_copy2 = np.asarray(arr) + assert not np.may_share_memory(result_copy1, result_copy2) + + # or with explicit copy=True + result_copy1 = np.array(arr, copy=True) + result_copy2 = np.array(arr, copy=True) + assert not np.may_share_memory(result_copy1, result_copy2) + + if not np_version_gt2: + # copy=False semantics are only supported in NumPy>=2. + return + + msg = "Starting with NumPy 2.0, the behavior of the 'copy' keyword has changed" + with tm.assert_produces_warning(FutureWarning, match=msg): + np.array(arr, copy=False) + + # except when there are actually no sparse filled values + arr2 = SparseArray(np.array([1, 2, 3])) + result_nocopy1 = np.array(arr2, copy=False) + result_nocopy2 = np.array(arr2, copy=False) + assert np.may_share_memory(result_nocopy1, result_nocopy2) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_astype.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_astype.py new file mode 100644 index 0000000000000000000000000000000000000000..e6e4a11a0f5ab4056606a127f8ed61ee3a4456a8 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_astype.py @@ -0,0 +1,133 @@ +import numpy as np +import pytest + +from pandas._libs.sparse import IntIndex + +from pandas import ( + SparseDtype, + Timestamp, +) +import pandas._testing as tm +from pandas.core.arrays.sparse import SparseArray + + +class TestAstype: + def test_astype(self): + # float -> float + arr = SparseArray([None, None, 0, 2]) + result = arr.astype("Sparse[float32]") + expected = SparseArray([None, None, 0, 2], dtype=np.dtype("float32")) + tm.assert_sp_array_equal(result, expected) + + dtype = SparseDtype("float64", fill_value=0) + result = arr.astype(dtype) + expected = SparseArray._simple_new( + np.array([0.0, 2.0], dtype=dtype.subtype), IntIndex(4, [2, 3]), dtype + ) + tm.assert_sp_array_equal(result, expected) + + dtype = SparseDtype("int64", 0) + result = arr.astype(dtype) + expected = SparseArray._simple_new( + np.array([0, 2], dtype=np.int64), IntIndex(4, [2, 3]), dtype + ) + tm.assert_sp_array_equal(result, expected) + + arr = SparseArray([0, np.nan, 0, 1], fill_value=0) + with pytest.raises(ValueError, match="NA"): + arr.astype("Sparse[i8]") + + def test_astype_bool(self): + a = SparseArray([1, 0, 0, 1], dtype=SparseDtype(int, 0)) + result = a.astype(bool) + expected = np.array([1, 0, 0, 1], dtype=bool) + tm.assert_numpy_array_equal(result, expected) + + # update fill value + result = a.astype(SparseDtype(bool, False)) + expected = SparseArray( + [True, False, False, True], dtype=SparseDtype(bool, False) + ) + tm.assert_sp_array_equal(result, expected) + + def test_astype_all(self, any_real_numpy_dtype): + vals = np.array([1, 2, 3]) + arr = SparseArray(vals, fill_value=1) + typ = np.dtype(any_real_numpy_dtype) + res = arr.astype(typ) + tm.assert_numpy_array_equal(res, vals.astype(any_real_numpy_dtype)) + + @pytest.mark.parametrize( + "arr, dtype, expected", + [ + ( + SparseArray([0, 1]), + "float", + SparseArray([0.0, 1.0], dtype=SparseDtype(float, 0.0)), + ), + (SparseArray([0, 1]), bool, SparseArray([False, True])), + ( + SparseArray([0, 1], fill_value=1), + bool, + SparseArray([False, True], dtype=SparseDtype(bool, True)), + ), + pytest.param( + SparseArray([0, 1]), + "datetime64[ns]", + SparseArray( + np.array([0, 1], dtype="datetime64[ns]"), + dtype=SparseDtype("datetime64[ns]", Timestamp("1970")), + ), + ), + ( + SparseArray([0, 1, 10]), + np.str_, + SparseArray(["0", "1", "10"], dtype=SparseDtype(np.str_, "0")), + ), + (SparseArray(["10", "20"]), float, SparseArray([10.0, 20.0])), + ( + SparseArray([0, 1, 0]), + object, + SparseArray([0, 1, 0], dtype=SparseDtype(object, 0)), + ), + ], + ) + def test_astype_more(self, arr, dtype, expected): + result = arr.astype(arr.dtype.update_dtype(dtype)) + tm.assert_sp_array_equal(result, expected) + + def test_astype_nan_raises(self): + arr = SparseArray([1.0, np.nan]) + with pytest.raises(ValueError, match="Cannot convert non-finite"): + arr.astype(int) + + def test_astype_copy_false(self): + # GH#34456 bug caused by using .view instead of .astype in astype_nansafe + arr = SparseArray([1, 2, 3]) + + dtype = SparseDtype(float, 0) + + result = arr.astype(dtype, copy=False) + expected = SparseArray([1.0, 2.0, 3.0], fill_value=0.0) + tm.assert_sp_array_equal(result, expected) + + def test_astype_dt64_to_int64(self): + # GH#49631 match non-sparse behavior + values = np.array(["NaT", "2016-01-02", "2016-01-03"], dtype="M8[ns]") + + arr = SparseArray(values) + result = arr.astype("int64") + expected = values.astype("int64") + tm.assert_numpy_array_equal(result, expected) + + # we should also be able to cast to equivalent Sparse[int64] + dtype_int64 = SparseDtype("int64", np.iinfo(np.int64).min) + result2 = arr.astype(dtype_int64) + tm.assert_numpy_array_equal(result2.to_numpy(), expected) + + # GH#50087 we should match the non-sparse behavior regardless of + # if we have a fill_value other than NaT + dtype = SparseDtype("datetime64[ns]", values[1]) + arr3 = SparseArray(values, dtype=dtype) + result3 = arr3.astype("int64") + tm.assert_numpy_array_equal(result3, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_combine_concat.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_combine_concat.py new file mode 100644 index 0000000000000000000000000000000000000000..0f09af269148bc6fec712b9b1df63cca6f44d248 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_combine_concat.py @@ -0,0 +1,62 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm +from pandas.core.arrays.sparse import SparseArray + + +class TestSparseArrayConcat: + @pytest.mark.parametrize("kind", ["integer", "block"]) + def test_basic(self, kind): + a = SparseArray([1, 0, 0, 2], kind=kind) + b = SparseArray([1, 0, 2, 2], kind=kind) + + result = SparseArray._concat_same_type([a, b]) + # Can't make any assertions about the sparse index itself + # since we aren't don't merge sparse blocs across arrays + # in to_concat + expected = np.array([1, 2, 1, 2, 2], dtype="int64") + tm.assert_numpy_array_equal(result.sp_values, expected) + assert result.kind == kind + + @pytest.mark.parametrize("kind", ["integer", "block"]) + def test_uses_first_kind(self, kind): + other = "integer" if kind == "block" else "block" + a = SparseArray([1, 0, 0, 2], kind=kind) + b = SparseArray([1, 0, 2, 2], kind=other) + + result = SparseArray._concat_same_type([a, b]) + expected = np.array([1, 2, 1, 2, 2], dtype="int64") + tm.assert_numpy_array_equal(result.sp_values, expected) + assert result.kind == kind + + +@pytest.mark.parametrize( + "other, expected_dtype", + [ + # compatible dtype -> preserve sparse + (pd.Series([3, 4, 5], dtype="int64"), pd.SparseDtype("int64", 0)), + # (pd.Series([3, 4, 5], dtype="Int64"), pd.SparseDtype("int64", 0)), + # incompatible dtype -> Sparse[common dtype] + (pd.Series([1.5, 2.5, 3.5], dtype="float64"), pd.SparseDtype("float64", 0)), + # incompatible dtype -> Sparse[object] dtype + (pd.Series(["a", "b", "c"], dtype=object), pd.SparseDtype(object, 0)), + # categorical with compatible categories -> dtype of the categories + (pd.Series([3, 4, 5], dtype="category"), np.dtype("int64")), + (pd.Series([1.5, 2.5, 3.5], dtype="category"), np.dtype("float64")), + # categorical with incompatible categories -> object dtype + (pd.Series(["a", "b", "c"], dtype="category"), np.dtype(object)), + ], +) +def test_concat_with_non_sparse(other, expected_dtype): + # https://github.com/pandas-dev/pandas/issues/34336 + s_sparse = pd.Series([1, 0, 2], dtype=pd.SparseDtype("int64", 0)) + + result = pd.concat([s_sparse, other], ignore_index=True) + expected = pd.Series(list(s_sparse) + list(other)).astype(expected_dtype) + tm.assert_series_equal(result, expected) + + result = pd.concat([other, s_sparse], ignore_index=True) + expected = pd.Series(list(other) + list(s_sparse)).astype(expected_dtype) + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_constructors.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_constructors.py new file mode 100644 index 0000000000000000000000000000000000000000..2831c8abdaf137b6454ea8f73bff7e94a3ec1b2b --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_constructors.py @@ -0,0 +1,285 @@ +import numpy as np +import pytest + +from pandas._libs.sparse import IntIndex + +import pandas as pd +from pandas import ( + SparseDtype, + isna, +) +import pandas._testing as tm +from pandas.core.arrays.sparse import SparseArray + + +class TestConstructors: + def test_constructor_dtype(self): + arr = SparseArray([np.nan, 1, 2, np.nan]) + assert arr.dtype == SparseDtype(np.float64, np.nan) + assert arr.dtype.subtype == np.float64 + assert np.isnan(arr.fill_value) + + arr = SparseArray([np.nan, 1, 2, np.nan], fill_value=0) + assert arr.dtype == SparseDtype(np.float64, 0) + assert arr.fill_value == 0 + + arr = SparseArray([0, 1, 2, 4], dtype=np.float64) + assert arr.dtype == SparseDtype(np.float64, np.nan) + assert np.isnan(arr.fill_value) + + arr = SparseArray([0, 1, 2, 4], dtype=np.int64) + assert arr.dtype == SparseDtype(np.int64, 0) + assert arr.fill_value == 0 + + arr = SparseArray([0, 1, 2, 4], fill_value=0, dtype=np.int64) + assert arr.dtype == SparseDtype(np.int64, 0) + assert arr.fill_value == 0 + + arr = SparseArray([0, 1, 2, 4], dtype=None) + assert arr.dtype == SparseDtype(np.int64, 0) + assert arr.fill_value == 0 + + arr = SparseArray([0, 1, 2, 4], fill_value=0, dtype=None) + assert arr.dtype == SparseDtype(np.int64, 0) + assert arr.fill_value == 0 + + def test_constructor_dtype_str(self): + result = SparseArray([1, 2, 3], dtype="int") + expected = SparseArray([1, 2, 3], dtype=int) + tm.assert_sp_array_equal(result, expected) + + def test_constructor_sparse_dtype(self): + result = SparseArray([1, 0, 0, 1], dtype=SparseDtype("int64", -1)) + expected = SparseArray([1, 0, 0, 1], fill_value=-1, dtype=np.int64) + tm.assert_sp_array_equal(result, expected) + assert result.sp_values.dtype == np.dtype("int64") + + def test_constructor_sparse_dtype_str(self): + result = SparseArray([1, 0, 0, 1], dtype="Sparse[int32]") + expected = SparseArray([1, 0, 0, 1], dtype=np.int32) + tm.assert_sp_array_equal(result, expected) + assert result.sp_values.dtype == np.dtype("int32") + + def test_constructor_object_dtype(self): + # GH#11856 + arr = SparseArray(["A", "A", np.nan, "B"], dtype=object) + assert arr.dtype == SparseDtype(object) + assert np.isnan(arr.fill_value) + + arr = SparseArray(["A", "A", np.nan, "B"], dtype=object, fill_value="A") + assert arr.dtype == SparseDtype(object, "A") + assert arr.fill_value == "A" + + def test_constructor_object_dtype_bool_fill(self): + # GH#17574 + data = [False, 0, 100.0, 0.0] + arr = SparseArray(data, dtype=object, fill_value=False) + assert arr.dtype == SparseDtype(object, False) + assert arr.fill_value is False + arr_expected = np.array(data, dtype=object) + it = (type(x) == type(y) and x == y for x, y in zip(arr, arr_expected)) + assert np.fromiter(it, dtype=np.bool_).all() + + @pytest.mark.parametrize("dtype", [SparseDtype(int, 0), int]) + def test_constructor_na_dtype(self, dtype): + with pytest.raises(ValueError, match="Cannot convert"): + SparseArray([0, 1, np.nan], dtype=dtype) + + def test_constructor_warns_when_losing_timezone(self): + # GH#32501 warn when losing timezone information + dti = pd.date_range("2016-01-01", periods=3, tz="US/Pacific") + + expected = SparseArray(np.asarray(dti, dtype="datetime64[ns]")) + + with tm.assert_produces_warning(UserWarning): + result = SparseArray(dti) + + tm.assert_sp_array_equal(result, expected) + + with tm.assert_produces_warning(UserWarning): + result = SparseArray(pd.Series(dti)) + + tm.assert_sp_array_equal(result, expected) + + def test_constructor_spindex_dtype(self): + arr = SparseArray(data=[1, 2], sparse_index=IntIndex(4, [1, 2])) + # TODO: actionable? + # XXX: Behavior change: specifying SparseIndex no longer changes the + # fill_value + expected = SparseArray([0, 1, 2, 0], kind="integer") + tm.assert_sp_array_equal(arr, expected) + assert arr.dtype == SparseDtype(np.int64) + assert arr.fill_value == 0 + + arr = SparseArray( + data=[1, 2, 3], + sparse_index=IntIndex(4, [1, 2, 3]), + dtype=np.int64, + fill_value=0, + ) + exp = SparseArray([0, 1, 2, 3], dtype=np.int64, fill_value=0) + tm.assert_sp_array_equal(arr, exp) + assert arr.dtype == SparseDtype(np.int64) + assert arr.fill_value == 0 + + arr = SparseArray( + data=[1, 2], sparse_index=IntIndex(4, [1, 2]), fill_value=0, dtype=np.int64 + ) + exp = SparseArray([0, 1, 2, 0], fill_value=0, dtype=np.int64) + tm.assert_sp_array_equal(arr, exp) + assert arr.dtype == SparseDtype(np.int64) + assert arr.fill_value == 0 + + arr = SparseArray( + data=[1, 2, 3], + sparse_index=IntIndex(4, [1, 2, 3]), + dtype=None, + fill_value=0, + ) + exp = SparseArray([0, 1, 2, 3], dtype=None) + tm.assert_sp_array_equal(arr, exp) + assert arr.dtype == SparseDtype(np.int64) + assert arr.fill_value == 0 + + @pytest.mark.parametrize("sparse_index", [None, IntIndex(1, [0])]) + def test_constructor_spindex_dtype_scalar(self, sparse_index): + # scalar input + msg = "Constructing SparseArray with scalar data is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + arr = SparseArray(data=1, sparse_index=sparse_index, dtype=None) + exp = SparseArray([1], dtype=None) + tm.assert_sp_array_equal(arr, exp) + assert arr.dtype == SparseDtype(np.int64) + assert arr.fill_value == 0 + + with tm.assert_produces_warning(FutureWarning, match=msg): + arr = SparseArray(data=1, sparse_index=IntIndex(1, [0]), dtype=None) + exp = SparseArray([1], dtype=None) + tm.assert_sp_array_equal(arr, exp) + assert arr.dtype == SparseDtype(np.int64) + assert arr.fill_value == 0 + + def test_constructor_spindex_dtype_scalar_broadcasts(self): + arr = SparseArray( + data=[1, 2], sparse_index=IntIndex(4, [1, 2]), fill_value=0, dtype=None + ) + exp = SparseArray([0, 1, 2, 0], fill_value=0, dtype=None) + tm.assert_sp_array_equal(arr, exp) + assert arr.dtype == SparseDtype(np.int64) + assert arr.fill_value == 0 + + @pytest.mark.parametrize( + "data, fill_value", + [ + (np.array([1, 2]), 0), + (np.array([1.0, 2.0]), np.nan), + ([True, False], False), + ([pd.Timestamp("2017-01-01")], pd.NaT), + ], + ) + def test_constructor_inferred_fill_value(self, data, fill_value): + result = SparseArray(data).fill_value + + if isna(fill_value): + assert isna(result) + else: + assert result == fill_value + + @pytest.mark.parametrize("format", ["coo", "csc", "csr"]) + @pytest.mark.parametrize("size", [0, 10]) + def test_from_spmatrix(self, size, format): + sp_sparse = pytest.importorskip("scipy.sparse") + + mat = sp_sparse.random(size, 1, density=0.5, format=format) + result = SparseArray.from_spmatrix(mat) + + result = np.asarray(result) + expected = mat.toarray().ravel() + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize("format", ["coo", "csc", "csr"]) + def test_from_spmatrix_including_explicit_zero(self, format): + sp_sparse = pytest.importorskip("scipy.sparse") + + mat = sp_sparse.random(10, 1, density=0.5, format=format) + mat.data[0] = 0 + result = SparseArray.from_spmatrix(mat) + + result = np.asarray(result) + expected = mat.toarray().ravel() + tm.assert_numpy_array_equal(result, expected) + + def test_from_spmatrix_raises(self): + sp_sparse = pytest.importorskip("scipy.sparse") + + mat = sp_sparse.eye(5, 4, format="csc") + + with pytest.raises(ValueError, match="not '4'"): + SparseArray.from_spmatrix(mat) + + def test_constructor_from_too_large_array(self): + with pytest.raises(TypeError, match="expected dimension <= 1 data"): + SparseArray(np.arange(10).reshape((2, 5))) + + def test_constructor_from_sparse(self): + zarr = SparseArray([0, 0, 1, 2, 3, 0, 4, 5, 0, 6], fill_value=0) + res = SparseArray(zarr) + assert res.fill_value == 0 + tm.assert_almost_equal(res.sp_values, zarr.sp_values) + + def test_constructor_copy(self): + arr_data = np.array([np.nan, np.nan, 1, 2, 3, np.nan, 4, 5, np.nan, 6]) + arr = SparseArray(arr_data) + + cp = SparseArray(arr, copy=True) + cp.sp_values[:3] = 0 + assert not (arr.sp_values[:3] == 0).any() + + not_copy = SparseArray(arr) + not_copy.sp_values[:3] = 0 + assert (arr.sp_values[:3] == 0).all() + + def test_constructor_bool(self): + # GH#10648 + data = np.array([False, False, True, True, False, False]) + arr = SparseArray(data, fill_value=False, dtype=bool) + + assert arr.dtype == SparseDtype(bool) + tm.assert_numpy_array_equal(arr.sp_values, np.array([True, True])) + # Behavior change: np.asarray densifies. + # tm.assert_numpy_array_equal(arr.sp_values, np.asarray(arr)) + tm.assert_numpy_array_equal(arr.sp_index.indices, np.array([2, 3], np.int32)) + + dense = arr.to_dense() + assert dense.dtype == bool + tm.assert_numpy_array_equal(dense, data) + + def test_constructor_bool_fill_value(self): + arr = SparseArray([True, False, True], dtype=None) + assert arr.dtype == SparseDtype(np.bool_) + assert not arr.fill_value + + arr = SparseArray([True, False, True], dtype=np.bool_) + assert arr.dtype == SparseDtype(np.bool_) + assert not arr.fill_value + + arr = SparseArray([True, False, True], dtype=np.bool_, fill_value=True) + assert arr.dtype == SparseDtype(np.bool_, True) + assert arr.fill_value + + def test_constructor_float32(self): + # GH#10648 + data = np.array([1.0, np.nan, 3], dtype=np.float32) + arr = SparseArray(data, dtype=np.float32) + + assert arr.dtype == SparseDtype(np.float32) + tm.assert_numpy_array_equal(arr.sp_values, np.array([1, 3], dtype=np.float32)) + # Behavior change: np.asarray densifies. + # tm.assert_numpy_array_equal(arr.sp_values, np.asarray(arr)) + tm.assert_numpy_array_equal( + arr.sp_index.indices, np.array([0, 2], dtype=np.int32) + ) + + dense = arr.to_dense() + assert dense.dtype == np.float32 + tm.assert_numpy_array_equal(dense, data) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_dtype.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_dtype.py new file mode 100644 index 0000000000000000000000000000000000000000..149c28341ba3d8b83b490361f7cfb4f9df0994ea --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_dtype.py @@ -0,0 +1,224 @@ +import re +import warnings + +import numpy as np +import pytest + +import pandas as pd +from pandas import SparseDtype + + +@pytest.mark.parametrize( + "dtype, fill_value", + [ + ("int", 0), + ("float", np.nan), + ("bool", False), + ("object", np.nan), + ("datetime64[ns]", np.datetime64("NaT", "ns")), + ("timedelta64[ns]", np.timedelta64("NaT", "ns")), + ], +) +def test_inferred_dtype(dtype, fill_value): + sparse_dtype = SparseDtype(dtype) + result = sparse_dtype.fill_value + if pd.isna(fill_value): + assert pd.isna(result) and type(result) == type(fill_value) + else: + assert result == fill_value + + +def test_from_sparse_dtype(): + dtype = SparseDtype("float", 0) + result = SparseDtype(dtype) + assert result.fill_value == 0 + + +def test_from_sparse_dtype_fill_value(): + dtype = SparseDtype("int", 1) + result = SparseDtype(dtype, fill_value=2) + expected = SparseDtype("int", 2) + assert result == expected + + +@pytest.mark.parametrize( + "dtype, fill_value", + [ + ("int", None), + ("float", None), + ("bool", None), + ("object", None), + ("datetime64[ns]", None), + ("timedelta64[ns]", None), + ("int", np.nan), + ("float", 0), + ], +) +def test_equal(dtype, fill_value): + a = SparseDtype(dtype, fill_value) + b = SparseDtype(dtype, fill_value) + assert a == b + assert b == a + + +def test_nans_equal(): + a = SparseDtype(float, float("nan")) + b = SparseDtype(float, np.nan) + assert a == b + assert b == a + + +with warnings.catch_warnings(): + msg = "Allowing arbitrary scalar fill_value in SparseDtype is deprecated" + warnings.filterwarnings("ignore", msg, category=FutureWarning) + + tups = [ + (SparseDtype("float64"), SparseDtype("float32")), + (SparseDtype("float64"), SparseDtype("float64", 0)), + (SparseDtype("float64"), SparseDtype("datetime64[ns]", np.nan)), + (SparseDtype(int, pd.NaT), SparseDtype(float, pd.NaT)), + (SparseDtype("float64"), np.dtype("float64")), + ] + + +@pytest.mark.parametrize( + "a, b", + tups, +) +def test_not_equal(a, b): + assert a != b + + +def test_construct_from_string_raises(): + with pytest.raises( + TypeError, match="Cannot construct a 'SparseDtype' from 'not a dtype'" + ): + SparseDtype.construct_from_string("not a dtype") + + +@pytest.mark.parametrize( + "dtype, expected", + [ + (SparseDtype(int), True), + (SparseDtype(float), True), + (SparseDtype(bool), True), + (SparseDtype(object), False), + (SparseDtype(str), False), + ], +) +def test_is_numeric(dtype, expected): + assert dtype._is_numeric is expected + + +def test_str_uses_object(): + result = SparseDtype(str).subtype + assert result == np.dtype("object") + + +@pytest.mark.parametrize( + "string, expected", + [ + ("Sparse[float64]", SparseDtype(np.dtype("float64"))), + ("Sparse[float32]", SparseDtype(np.dtype("float32"))), + ("Sparse[int]", SparseDtype(np.dtype("int"))), + ("Sparse[str]", SparseDtype(np.dtype("str"))), + ("Sparse[datetime64[ns]]", SparseDtype(np.dtype("datetime64[ns]"))), + ("Sparse", SparseDtype(np.dtype("float"), np.nan)), + ], +) +def test_construct_from_string(string, expected): + result = SparseDtype.construct_from_string(string) + assert result == expected + + +@pytest.mark.parametrize( + "a, b, expected", + [ + (SparseDtype(float, 0.0), SparseDtype(np.dtype("float"), 0.0), True), + (SparseDtype(int, 0), SparseDtype(int, 0), True), + (SparseDtype(float, float("nan")), SparseDtype(float, np.nan), True), + (SparseDtype(float, 0), SparseDtype(float, np.nan), False), + (SparseDtype(int, 0.0), SparseDtype(float, 0.0), False), + ], +) +def test_hash_equal(a, b, expected): + result = a == b + assert result is expected + + result = hash(a) == hash(b) + assert result is expected + + +@pytest.mark.parametrize( + "string, expected", + [ + ("Sparse[int]", "int"), + ("Sparse[int, 0]", "int"), + ("Sparse[int64]", "int64"), + ("Sparse[int64, 0]", "int64"), + ("Sparse[datetime64[ns], 0]", "datetime64[ns]"), + ], +) +def test_parse_subtype(string, expected): + subtype, _ = SparseDtype._parse_subtype(string) + assert subtype == expected + + +@pytest.mark.parametrize( + "string", ["Sparse[int, 1]", "Sparse[float, 0.0]", "Sparse[bool, True]"] +) +def test_construct_from_string_fill_value_raises(string): + with pytest.raises(TypeError, match="fill_value in the string is not"): + SparseDtype.construct_from_string(string) + + +@pytest.mark.parametrize( + "original, dtype, expected", + [ + (SparseDtype(int, 0), float, SparseDtype(float, 0.0)), + (SparseDtype(int, 1), float, SparseDtype(float, 1.0)), + (SparseDtype(int, 1), np.str_, SparseDtype(object, "1")), + (SparseDtype(float, 1.5), int, SparseDtype(int, 1)), + ], +) +def test_update_dtype(original, dtype, expected): + result = original.update_dtype(dtype) + assert result == expected + + +@pytest.mark.parametrize( + "original, dtype, expected_error_msg", + [ + ( + SparseDtype(float, np.nan), + int, + re.escape("Cannot convert non-finite values (NA or inf) to integer"), + ), + ( + SparseDtype(str, "abc"), + int, + r"invalid literal for int\(\) with base 10: ('abc'|np\.str_\('abc'\))", + ), + ], +) +def test_update_dtype_raises(original, dtype, expected_error_msg): + with pytest.raises(ValueError, match=expected_error_msg): + original.update_dtype(dtype) + + +def test_repr(): + # GH-34352 + result = str(SparseDtype("int64", fill_value=0)) + expected = "Sparse[int64, 0]" + assert result == expected + + result = str(SparseDtype(object, fill_value="0")) + expected = "Sparse[object, '0']" + assert result == expected + + +def test_sparse_dtype_subtype_must_be_numpy_dtype(): + # GH#53160 + msg = "SparseDtype subtype must be a numpy dtype" + with pytest.raises(TypeError, match=msg): + SparseDtype("category", fill_value="c") diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_indexing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_indexing.py new file mode 100644 index 0000000000000000000000000000000000000000..60029ac06ddb47ef0ad4ee35a75fd09ca12f7f53 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_indexing.py @@ -0,0 +1,302 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import SparseDtype +import pandas._testing as tm +from pandas.core.arrays.sparse import SparseArray + + +@pytest.fixture +def arr_data(): + return np.array([np.nan, np.nan, 1, 2, 3, np.nan, 4, 5, np.nan, 6]) + + +@pytest.fixture +def arr(arr_data): + return SparseArray(arr_data) + + +class TestGetitem: + def test_getitem(self, arr): + dense = arr.to_dense() + for i, value in enumerate(arr): + tm.assert_almost_equal(value, dense[i]) + tm.assert_almost_equal(arr[-i], dense[-i]) + + def test_getitem_arraylike_mask(self, arr): + arr = SparseArray([0, 1, 2]) + result = arr[[True, False, True]] + expected = SparseArray([0, 2]) + tm.assert_sp_array_equal(result, expected) + + @pytest.mark.parametrize( + "slc", + [ + np.s_[:], + np.s_[1:10], + np.s_[1:100], + np.s_[10:1], + np.s_[:-3], + np.s_[-5:-4], + np.s_[:-12], + np.s_[-12:], + np.s_[2:], + np.s_[2::3], + np.s_[::2], + np.s_[::-1], + np.s_[::-2], + np.s_[1:6:2], + np.s_[:-6:-2], + ], + ) + @pytest.mark.parametrize( + "as_dense", [[np.nan] * 10, [1] * 10, [np.nan] * 5 + [1] * 5, []] + ) + def test_getslice(self, slc, as_dense): + as_dense = np.array(as_dense) + arr = SparseArray(as_dense) + + result = arr[slc] + expected = SparseArray(as_dense[slc]) + + tm.assert_sp_array_equal(result, expected) + + def test_getslice_tuple(self): + dense = np.array([np.nan, 0, 3, 4, 0, 5, np.nan, np.nan, 0]) + + sparse = SparseArray(dense) + res = sparse[(slice(4, None),)] + exp = SparseArray(dense[4:]) + tm.assert_sp_array_equal(res, exp) + + sparse = SparseArray(dense, fill_value=0) + res = sparse[(slice(4, None),)] + exp = SparseArray(dense[4:], fill_value=0) + tm.assert_sp_array_equal(res, exp) + + msg = "too many indices for array" + with pytest.raises(IndexError, match=msg): + sparse[4:, :] + + with pytest.raises(IndexError, match=msg): + # check numpy compat + dense[4:, :] + + def test_boolean_slice_empty(self): + arr = SparseArray([0, 1, 2]) + res = arr[[False, False, False]] + assert res.dtype == arr.dtype + + def test_getitem_bool_sparse_array(self, arr): + # GH 23122 + spar_bool = SparseArray([False, True] * 5, dtype=np.bool_, fill_value=True) + exp = SparseArray([np.nan, 2, np.nan, 5, 6]) + tm.assert_sp_array_equal(arr[spar_bool], exp) + + spar_bool = ~spar_bool + res = arr[spar_bool] + exp = SparseArray([np.nan, 1, 3, 4, np.nan]) + tm.assert_sp_array_equal(res, exp) + + spar_bool = SparseArray( + [False, True, np.nan] * 3, dtype=np.bool_, fill_value=np.nan + ) + res = arr[spar_bool] + exp = SparseArray([np.nan, 3, 5]) + tm.assert_sp_array_equal(res, exp) + + def test_getitem_bool_sparse_array_as_comparison(self): + # GH 45110 + arr = SparseArray([1, 2, 3, 4, np.nan, np.nan], fill_value=np.nan) + res = arr[arr > 2] + exp = SparseArray([3.0, 4.0], fill_value=np.nan) + tm.assert_sp_array_equal(res, exp) + + def test_get_item(self, arr): + zarr = SparseArray([0, 0, 1, 2, 3, 0, 4, 5, 0, 6], fill_value=0) + + assert np.isnan(arr[1]) + assert arr[2] == 1 + assert arr[7] == 5 + + assert zarr[0] == 0 + assert zarr[2] == 1 + assert zarr[7] == 5 + + errmsg = "must be an integer between -10 and 10" + + with pytest.raises(IndexError, match=errmsg): + arr[11] + + with pytest.raises(IndexError, match=errmsg): + arr[-11] + + assert arr[-1] == arr[len(arr) - 1] + + +class TestSetitem: + def test_set_item(self, arr_data): + arr = SparseArray(arr_data).copy() + + def setitem(): + arr[5] = 3 + + def setslice(): + arr[1:5] = 2 + + with pytest.raises(TypeError, match="assignment via setitem"): + setitem() + + with pytest.raises(TypeError, match="assignment via setitem"): + setslice() + + +class TestTake: + def test_take_scalar_raises(self, arr): + msg = "'indices' must be an array, not a scalar '2'." + with pytest.raises(ValueError, match=msg): + arr.take(2) + + def test_take(self, arr_data, arr): + exp = SparseArray(np.take(arr_data, [2, 3])) + tm.assert_sp_array_equal(arr.take([2, 3]), exp) + + exp = SparseArray(np.take(arr_data, [0, 1, 2])) + tm.assert_sp_array_equal(arr.take([0, 1, 2]), exp) + + def test_take_all_empty(self): + sparse = pd.array([0, 0], dtype=SparseDtype("int64")) + result = sparse.take([0, 1], allow_fill=True, fill_value=np.nan) + tm.assert_sp_array_equal(sparse, result) + + def test_take_different_fill_value(self): + # Take with a different fill value shouldn't overwrite the original + sparse = pd.array([0.0], dtype=SparseDtype("float64", fill_value=0.0)) + result = sparse.take([0, -1], allow_fill=True, fill_value=np.nan) + expected = pd.array([0, np.nan], dtype=sparse.dtype) + tm.assert_sp_array_equal(expected, result) + + def test_take_fill_value(self): + data = np.array([1, np.nan, 0, 3, 0]) + sparse = SparseArray(data, fill_value=0) + + exp = SparseArray(np.take(data, [0]), fill_value=0) + tm.assert_sp_array_equal(sparse.take([0]), exp) + + exp = SparseArray(np.take(data, [1, 3, 4]), fill_value=0) + tm.assert_sp_array_equal(sparse.take([1, 3, 4]), exp) + + def test_take_negative(self, arr_data, arr): + exp = SparseArray(np.take(arr_data, [-1])) + tm.assert_sp_array_equal(arr.take([-1]), exp) + + exp = SparseArray(np.take(arr_data, [-4, -3, -2])) + tm.assert_sp_array_equal(arr.take([-4, -3, -2]), exp) + + def test_bad_take(self, arr): + with pytest.raises(IndexError, match="bounds"): + arr.take([11]) + + def test_take_filling(self): + # similar tests as GH 12631 + sparse = SparseArray([np.nan, np.nan, 1, np.nan, 4]) + result = sparse.take(np.array([1, 0, -1])) + expected = SparseArray([np.nan, np.nan, 4]) + tm.assert_sp_array_equal(result, expected) + + # TODO: actionable? + # XXX: test change: fill_value=True -> allow_fill=True + result = sparse.take(np.array([1, 0, -1]), allow_fill=True) + expected = SparseArray([np.nan, np.nan, np.nan]) + tm.assert_sp_array_equal(result, expected) + + # allow_fill=False + result = sparse.take(np.array([1, 0, -1]), allow_fill=False, fill_value=True) + expected = SparseArray([np.nan, np.nan, 4]) + tm.assert_sp_array_equal(result, expected) + + msg = "Invalid value in 'indices'" + with pytest.raises(ValueError, match=msg): + sparse.take(np.array([1, 0, -2]), allow_fill=True) + + with pytest.raises(ValueError, match=msg): + sparse.take(np.array([1, 0, -5]), allow_fill=True) + + msg = "out of bounds value in 'indices'" + with pytest.raises(IndexError, match=msg): + sparse.take(np.array([1, -6])) + with pytest.raises(IndexError, match=msg): + sparse.take(np.array([1, 5])) + with pytest.raises(IndexError, match=msg): + sparse.take(np.array([1, 5]), allow_fill=True) + + def test_take_filling_fill_value(self): + # same tests as GH#12631 + sparse = SparseArray([np.nan, 0, 1, 0, 4], fill_value=0) + result = sparse.take(np.array([1, 0, -1])) + expected = SparseArray([0, np.nan, 4], fill_value=0) + tm.assert_sp_array_equal(result, expected) + + # fill_value + result = sparse.take(np.array([1, 0, -1]), allow_fill=True) + # TODO: actionable? + # XXX: behavior change. + # the old way of filling self.fill_value doesn't follow EA rules. + # It's supposed to be self.dtype.na_value (nan in this case) + expected = SparseArray([0, np.nan, np.nan], fill_value=0) + tm.assert_sp_array_equal(result, expected) + + # allow_fill=False + result = sparse.take(np.array([1, 0, -1]), allow_fill=False, fill_value=True) + expected = SparseArray([0, np.nan, 4], fill_value=0) + tm.assert_sp_array_equal(result, expected) + + msg = "Invalid value in 'indices'." + with pytest.raises(ValueError, match=msg): + sparse.take(np.array([1, 0, -2]), allow_fill=True) + with pytest.raises(ValueError, match=msg): + sparse.take(np.array([1, 0, -5]), allow_fill=True) + + msg = "out of bounds value in 'indices'" + with pytest.raises(IndexError, match=msg): + sparse.take(np.array([1, -6])) + with pytest.raises(IndexError, match=msg): + sparse.take(np.array([1, 5])) + with pytest.raises(IndexError, match=msg): + sparse.take(np.array([1, 5]), fill_value=True) + + @pytest.mark.parametrize("kind", ["block", "integer"]) + def test_take_filling_all_nan(self, kind): + sparse = SparseArray([np.nan, np.nan, np.nan, np.nan, np.nan], kind=kind) + result = sparse.take(np.array([1, 0, -1])) + expected = SparseArray([np.nan, np.nan, np.nan], kind=kind) + tm.assert_sp_array_equal(result, expected) + + result = sparse.take(np.array([1, 0, -1]), fill_value=True) + expected = SparseArray([np.nan, np.nan, np.nan], kind=kind) + tm.assert_sp_array_equal(result, expected) + + msg = "out of bounds value in 'indices'" + with pytest.raises(IndexError, match=msg): + sparse.take(np.array([1, -6])) + with pytest.raises(IndexError, match=msg): + sparse.take(np.array([1, 5])) + with pytest.raises(IndexError, match=msg): + sparse.take(np.array([1, 5]), fill_value=True) + + +class TestWhere: + def test_where_retain_fill_value(self): + # GH#45691 don't lose fill_value on _where + arr = SparseArray([np.nan, 1.0], fill_value=0) + + mask = np.array([True, False]) + + res = arr._where(~mask, 1) + exp = SparseArray([1, 1.0], fill_value=0) + tm.assert_sp_array_equal(res, exp) + + ser = pd.Series(arr) + res = ser.where(~mask, 1) + tm.assert_series_equal(res, pd.Series(exp)) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_libsparse.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_libsparse.py new file mode 100644 index 0000000000000000000000000000000000000000..7a77a2064e7e097f924a3901994d131d98164ad6 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_libsparse.py @@ -0,0 +1,551 @@ +import operator + +import numpy as np +import pytest + +import pandas._libs.sparse as splib +import pandas.util._test_decorators as td + +from pandas import Series +import pandas._testing as tm +from pandas.core.arrays.sparse import ( + BlockIndex, + IntIndex, + make_sparse_index, +) + + +@pytest.fixture +def test_length(): + return 20 + + +@pytest.fixture( + params=[ + [ + [0, 7, 15], + [3, 5, 5], + [2, 9, 14], + [2, 3, 5], + [2, 9, 15], + [1, 3, 4], + ], + [ + [0, 5], + [4, 4], + [1], + [4], + [1], + [3], + ], + [ + [0], + [10], + [0, 5], + [3, 7], + [0, 5], + [3, 5], + ], + [ + [10], + [5], + [0, 12], + [5, 3], + [12], + [3], + ], + [ + [0, 10], + [4, 6], + [5, 17], + [4, 2], + [], + [], + ], + [ + [0], + [5], + [], + [], + [], + [], + ], + ], + ids=[ + "plain_case", + "delete_blocks", + "split_blocks", + "skip_block", + "no_intersect", + "one_empty", + ], +) +def cases(request): + return request.param + + +class TestSparseIndexUnion: + @pytest.mark.parametrize( + "xloc, xlen, yloc, ylen, eloc, elen", + [ + [[0], [5], [5], [4], [0], [9]], + [[0, 10], [5, 5], [2, 17], [5, 2], [0, 10, 17], [7, 5, 2]], + [[1], [5], [3], [5], [1], [7]], + [[2, 10], [4, 4], [4], [8], [2], [12]], + [[0, 5], [3, 5], [0], [7], [0], [10]], + [[2, 10], [4, 4], [4, 13], [8, 4], [2], [15]], + [[2], [15], [4, 9, 14], [3, 2, 2], [2], [15]], + [[0, 10], [3, 3], [5, 15], [2, 2], [0, 5, 10, 15], [3, 2, 3, 2]], + ], + ) + def test_index_make_union(self, xloc, xlen, yloc, ylen, eloc, elen, test_length): + # Case 1 + # x: ---- + # y: ---- + # r: -------- + # Case 2 + # x: ----- ----- + # y: ----- -- + # Case 3 + # x: ------ + # y: ------- + # r: ---------- + # Case 4 + # x: ------ ----- + # y: ------- + # r: ------------- + # Case 5 + # x: --- ----- + # y: ------- + # r: ------------- + # Case 6 + # x: ------ ----- + # y: ------- --- + # r: ------------- + # Case 7 + # x: ---------------------- + # y: ---- ---- --- + # r: ---------------------- + # Case 8 + # x: ---- --- + # y: --- --- + xindex = BlockIndex(test_length, xloc, xlen) + yindex = BlockIndex(test_length, yloc, ylen) + bresult = xindex.make_union(yindex) + assert isinstance(bresult, BlockIndex) + tm.assert_numpy_array_equal(bresult.blocs, np.array(eloc, dtype=np.int32)) + tm.assert_numpy_array_equal(bresult.blengths, np.array(elen, dtype=np.int32)) + + ixindex = xindex.to_int_index() + iyindex = yindex.to_int_index() + iresult = ixindex.make_union(iyindex) + assert isinstance(iresult, IntIndex) + tm.assert_numpy_array_equal(iresult.indices, bresult.to_int_index().indices) + + def test_int_index_make_union(self): + a = IntIndex(5, np.array([0, 3, 4], dtype=np.int32)) + b = IntIndex(5, np.array([0, 2], dtype=np.int32)) + res = a.make_union(b) + exp = IntIndex(5, np.array([0, 2, 3, 4], np.int32)) + assert res.equals(exp) + + a = IntIndex(5, np.array([], dtype=np.int32)) + b = IntIndex(5, np.array([0, 2], dtype=np.int32)) + res = a.make_union(b) + exp = IntIndex(5, np.array([0, 2], np.int32)) + assert res.equals(exp) + + a = IntIndex(5, np.array([], dtype=np.int32)) + b = IntIndex(5, np.array([], dtype=np.int32)) + res = a.make_union(b) + exp = IntIndex(5, np.array([], np.int32)) + assert res.equals(exp) + + a = IntIndex(5, np.array([0, 1, 2, 3, 4], dtype=np.int32)) + b = IntIndex(5, np.array([0, 1, 2, 3, 4], dtype=np.int32)) + res = a.make_union(b) + exp = IntIndex(5, np.array([0, 1, 2, 3, 4], np.int32)) + assert res.equals(exp) + + a = IntIndex(5, np.array([0, 1], dtype=np.int32)) + b = IntIndex(4, np.array([0, 1], dtype=np.int32)) + + msg = "Indices must reference same underlying length" + with pytest.raises(ValueError, match=msg): + a.make_union(b) + + +class TestSparseIndexIntersect: + @td.skip_if_windows + def test_intersect(self, cases, test_length): + xloc, xlen, yloc, ylen, eloc, elen = cases + xindex = BlockIndex(test_length, xloc, xlen) + yindex = BlockIndex(test_length, yloc, ylen) + expected = BlockIndex(test_length, eloc, elen) + longer_index = BlockIndex(test_length + 1, yloc, ylen) + + result = xindex.intersect(yindex) + assert result.equals(expected) + result = xindex.to_int_index().intersect(yindex.to_int_index()) + assert result.equals(expected.to_int_index()) + + msg = "Indices must reference same underlying length" + with pytest.raises(Exception, match=msg): + xindex.intersect(longer_index) + with pytest.raises(Exception, match=msg): + xindex.to_int_index().intersect(longer_index.to_int_index()) + + def test_intersect_empty(self): + xindex = IntIndex(4, np.array([], dtype=np.int32)) + yindex = IntIndex(4, np.array([2, 3], dtype=np.int32)) + assert xindex.intersect(yindex).equals(xindex) + assert yindex.intersect(xindex).equals(xindex) + + xindex = xindex.to_block_index() + yindex = yindex.to_block_index() + assert xindex.intersect(yindex).equals(xindex) + assert yindex.intersect(xindex).equals(xindex) + + @pytest.mark.parametrize( + "case", + [ + # Argument 2 to "IntIndex" has incompatible type "ndarray[Any, + # dtype[signedinteger[_32Bit]]]"; expected "Sequence[int]" + IntIndex(5, np.array([1, 2], dtype=np.int32)), # type: ignore[arg-type] + IntIndex(5, np.array([0, 2, 4], dtype=np.int32)), # type: ignore[arg-type] + IntIndex(0, np.array([], dtype=np.int32)), # type: ignore[arg-type] + IntIndex(5, np.array([], dtype=np.int32)), # type: ignore[arg-type] + ], + ) + def test_intersect_identical(self, case): + assert case.intersect(case).equals(case) + case = case.to_block_index() + assert case.intersect(case).equals(case) + + +class TestSparseIndexCommon: + def test_int_internal(self): + idx = make_sparse_index(4, np.array([2, 3], dtype=np.int32), kind="integer") + assert isinstance(idx, IntIndex) + assert idx.npoints == 2 + tm.assert_numpy_array_equal(idx.indices, np.array([2, 3], dtype=np.int32)) + + idx = make_sparse_index(4, np.array([], dtype=np.int32), kind="integer") + assert isinstance(idx, IntIndex) + assert idx.npoints == 0 + tm.assert_numpy_array_equal(idx.indices, np.array([], dtype=np.int32)) + + idx = make_sparse_index( + 4, np.array([0, 1, 2, 3], dtype=np.int32), kind="integer" + ) + assert isinstance(idx, IntIndex) + assert idx.npoints == 4 + tm.assert_numpy_array_equal(idx.indices, np.array([0, 1, 2, 3], dtype=np.int32)) + + def test_block_internal(self): + idx = make_sparse_index(4, np.array([2, 3], dtype=np.int32), kind="block") + assert isinstance(idx, BlockIndex) + assert idx.npoints == 2 + tm.assert_numpy_array_equal(idx.blocs, np.array([2], dtype=np.int32)) + tm.assert_numpy_array_equal(idx.blengths, np.array([2], dtype=np.int32)) + + idx = make_sparse_index(4, np.array([], dtype=np.int32), kind="block") + assert isinstance(idx, BlockIndex) + assert idx.npoints == 0 + tm.assert_numpy_array_equal(idx.blocs, np.array([], dtype=np.int32)) + tm.assert_numpy_array_equal(idx.blengths, np.array([], dtype=np.int32)) + + idx = make_sparse_index(4, np.array([0, 1, 2, 3], dtype=np.int32), kind="block") + assert isinstance(idx, BlockIndex) + assert idx.npoints == 4 + tm.assert_numpy_array_equal(idx.blocs, np.array([0], dtype=np.int32)) + tm.assert_numpy_array_equal(idx.blengths, np.array([4], dtype=np.int32)) + + idx = make_sparse_index(4, np.array([0, 2, 3], dtype=np.int32), kind="block") + assert isinstance(idx, BlockIndex) + assert idx.npoints == 3 + tm.assert_numpy_array_equal(idx.blocs, np.array([0, 2], dtype=np.int32)) + tm.assert_numpy_array_equal(idx.blengths, np.array([1, 2], dtype=np.int32)) + + @pytest.mark.parametrize("kind", ["integer", "block"]) + def test_lookup(self, kind): + idx = make_sparse_index(4, np.array([2, 3], dtype=np.int32), kind=kind) + assert idx.lookup(-1) == -1 + assert idx.lookup(0) == -1 + assert idx.lookup(1) == -1 + assert idx.lookup(2) == 0 + assert idx.lookup(3) == 1 + assert idx.lookup(4) == -1 + + idx = make_sparse_index(4, np.array([], dtype=np.int32), kind=kind) + + for i in range(-1, 5): + assert idx.lookup(i) == -1 + + idx = make_sparse_index(4, np.array([0, 1, 2, 3], dtype=np.int32), kind=kind) + assert idx.lookup(-1) == -1 + assert idx.lookup(0) == 0 + assert idx.lookup(1) == 1 + assert idx.lookup(2) == 2 + assert idx.lookup(3) == 3 + assert idx.lookup(4) == -1 + + idx = make_sparse_index(4, np.array([0, 2, 3], dtype=np.int32), kind=kind) + assert idx.lookup(-1) == -1 + assert idx.lookup(0) == 0 + assert idx.lookup(1) == -1 + assert idx.lookup(2) == 1 + assert idx.lookup(3) == 2 + assert idx.lookup(4) == -1 + + @pytest.mark.parametrize("kind", ["integer", "block"]) + def test_lookup_array(self, kind): + idx = make_sparse_index(4, np.array([2, 3], dtype=np.int32), kind=kind) + + res = idx.lookup_array(np.array([-1, 0, 2], dtype=np.int32)) + exp = np.array([-1, -1, 0], dtype=np.int32) + tm.assert_numpy_array_equal(res, exp) + + res = idx.lookup_array(np.array([4, 2, 1, 3], dtype=np.int32)) + exp = np.array([-1, 0, -1, 1], dtype=np.int32) + tm.assert_numpy_array_equal(res, exp) + + idx = make_sparse_index(4, np.array([], dtype=np.int32), kind=kind) + res = idx.lookup_array(np.array([-1, 0, 2, 4], dtype=np.int32)) + exp = np.array([-1, -1, -1, -1], dtype=np.int32) + tm.assert_numpy_array_equal(res, exp) + + idx = make_sparse_index(4, np.array([0, 1, 2, 3], dtype=np.int32), kind=kind) + res = idx.lookup_array(np.array([-1, 0, 2], dtype=np.int32)) + exp = np.array([-1, 0, 2], dtype=np.int32) + tm.assert_numpy_array_equal(res, exp) + + res = idx.lookup_array(np.array([4, 2, 1, 3], dtype=np.int32)) + exp = np.array([-1, 2, 1, 3], dtype=np.int32) + tm.assert_numpy_array_equal(res, exp) + + idx = make_sparse_index(4, np.array([0, 2, 3], dtype=np.int32), kind=kind) + res = idx.lookup_array(np.array([2, 1, 3, 0], dtype=np.int32)) + exp = np.array([1, -1, 2, 0], dtype=np.int32) + tm.assert_numpy_array_equal(res, exp) + + res = idx.lookup_array(np.array([1, 4, 2, 5], dtype=np.int32)) + exp = np.array([-1, -1, 1, -1], dtype=np.int32) + tm.assert_numpy_array_equal(res, exp) + + @pytest.mark.parametrize( + "idx, expected", + [ + [0, -1], + [5, 0], + [7, 2], + [8, -1], + [9, -1], + [10, -1], + [11, -1], + [12, 3], + [17, 8], + [18, -1], + ], + ) + def test_lookup_basics(self, idx, expected): + bindex = BlockIndex(20, [5, 12], [3, 6]) + assert bindex.lookup(idx) == expected + + iindex = bindex.to_int_index() + assert iindex.lookup(idx) == expected + + +class TestBlockIndex: + def test_block_internal(self): + idx = make_sparse_index(4, np.array([2, 3], dtype=np.int32), kind="block") + assert isinstance(idx, BlockIndex) + assert idx.npoints == 2 + tm.assert_numpy_array_equal(idx.blocs, np.array([2], dtype=np.int32)) + tm.assert_numpy_array_equal(idx.blengths, np.array([2], dtype=np.int32)) + + idx = make_sparse_index(4, np.array([], dtype=np.int32), kind="block") + assert isinstance(idx, BlockIndex) + assert idx.npoints == 0 + tm.assert_numpy_array_equal(idx.blocs, np.array([], dtype=np.int32)) + tm.assert_numpy_array_equal(idx.blengths, np.array([], dtype=np.int32)) + + idx = make_sparse_index(4, np.array([0, 1, 2, 3], dtype=np.int32), kind="block") + assert isinstance(idx, BlockIndex) + assert idx.npoints == 4 + tm.assert_numpy_array_equal(idx.blocs, np.array([0], dtype=np.int32)) + tm.assert_numpy_array_equal(idx.blengths, np.array([4], dtype=np.int32)) + + idx = make_sparse_index(4, np.array([0, 2, 3], dtype=np.int32), kind="block") + assert isinstance(idx, BlockIndex) + assert idx.npoints == 3 + tm.assert_numpy_array_equal(idx.blocs, np.array([0, 2], dtype=np.int32)) + tm.assert_numpy_array_equal(idx.blengths, np.array([1, 2], dtype=np.int32)) + + @pytest.mark.parametrize("i", [5, 10, 100, 101]) + def test_make_block_boundary(self, i): + idx = make_sparse_index(i, np.arange(0, i, 2, dtype=np.int32), kind="block") + + exp = np.arange(0, i, 2, dtype=np.int32) + tm.assert_numpy_array_equal(idx.blocs, exp) + tm.assert_numpy_array_equal(idx.blengths, np.ones(len(exp), dtype=np.int32)) + + def test_equals(self): + index = BlockIndex(10, [0, 4], [2, 5]) + + assert index.equals(index) + assert not index.equals(BlockIndex(10, [0, 4], [2, 6])) + + def test_check_integrity(self): + locs = [] + lengths = [] + + # 0-length OK + BlockIndex(0, locs, lengths) + + # also OK even though empty + BlockIndex(1, locs, lengths) + + msg = "Block 0 extends beyond end" + with pytest.raises(ValueError, match=msg): + BlockIndex(10, [5], [10]) + + msg = "Block 0 overlaps" + with pytest.raises(ValueError, match=msg): + BlockIndex(10, [2, 5], [5, 3]) + + def test_to_int_index(self): + locs = [0, 10] + lengths = [4, 6] + exp_inds = [0, 1, 2, 3, 10, 11, 12, 13, 14, 15] + + block = BlockIndex(20, locs, lengths) + dense = block.to_int_index() + + tm.assert_numpy_array_equal(dense.indices, np.array(exp_inds, dtype=np.int32)) + + def test_to_block_index(self): + index = BlockIndex(10, [0, 5], [4, 5]) + assert index.to_block_index() is index + + +class TestIntIndex: + def test_check_integrity(self): + # Too many indices than specified in self.length + msg = "Too many indices" + + with pytest.raises(ValueError, match=msg): + IntIndex(length=1, indices=[1, 2, 3]) + + # No index can be negative. + msg = "No index can be less than zero" + + with pytest.raises(ValueError, match=msg): + IntIndex(length=5, indices=[1, -2, 3]) + + # No index can be negative. + msg = "No index can be less than zero" + + with pytest.raises(ValueError, match=msg): + IntIndex(length=5, indices=[1, -2, 3]) + + # All indices must be less than the length. + msg = "All indices must be less than the length" + + with pytest.raises(ValueError, match=msg): + IntIndex(length=5, indices=[1, 2, 5]) + + with pytest.raises(ValueError, match=msg): + IntIndex(length=5, indices=[1, 2, 6]) + + # Indices must be strictly ascending. + msg = "Indices must be strictly increasing" + + with pytest.raises(ValueError, match=msg): + IntIndex(length=5, indices=[1, 3, 2]) + + with pytest.raises(ValueError, match=msg): + IntIndex(length=5, indices=[1, 3, 3]) + + def test_int_internal(self): + idx = make_sparse_index(4, np.array([2, 3], dtype=np.int32), kind="integer") + assert isinstance(idx, IntIndex) + assert idx.npoints == 2 + tm.assert_numpy_array_equal(idx.indices, np.array([2, 3], dtype=np.int32)) + + idx = make_sparse_index(4, np.array([], dtype=np.int32), kind="integer") + assert isinstance(idx, IntIndex) + assert idx.npoints == 0 + tm.assert_numpy_array_equal(idx.indices, np.array([], dtype=np.int32)) + + idx = make_sparse_index( + 4, np.array([0, 1, 2, 3], dtype=np.int32), kind="integer" + ) + assert isinstance(idx, IntIndex) + assert idx.npoints == 4 + tm.assert_numpy_array_equal(idx.indices, np.array([0, 1, 2, 3], dtype=np.int32)) + + def test_equals(self): + index = IntIndex(10, [0, 1, 2, 3, 4]) + assert index.equals(index) + assert not index.equals(IntIndex(10, [0, 1, 2, 3])) + + def test_to_block_index(self, cases, test_length): + xloc, xlen, yloc, ylen, _, _ = cases + xindex = BlockIndex(test_length, xloc, xlen) + yindex = BlockIndex(test_length, yloc, ylen) + + # see if survive the round trip + xbindex = xindex.to_int_index().to_block_index() + ybindex = yindex.to_int_index().to_block_index() + assert isinstance(xbindex, BlockIndex) + assert xbindex.equals(xindex) + assert ybindex.equals(yindex) + + def test_to_int_index(self): + index = IntIndex(10, [2, 3, 4, 5, 6]) + assert index.to_int_index() is index + + +class TestSparseOperators: + @pytest.mark.parametrize("opname", ["add", "sub", "mul", "truediv", "floordiv"]) + def test_op(self, opname, cases, test_length): + xloc, xlen, yloc, ylen, _, _ = cases + sparse_op = getattr(splib, f"sparse_{opname}_float64") + python_op = getattr(operator, opname) + + xindex = BlockIndex(test_length, xloc, xlen) + yindex = BlockIndex(test_length, yloc, ylen) + + xdindex = xindex.to_int_index() + ydindex = yindex.to_int_index() + + x = np.arange(xindex.npoints) * 10.0 + 1 + y = np.arange(yindex.npoints) * 100.0 + 1 + + xfill = 0 + yfill = 2 + + result_block_vals, rb_index, bfill = sparse_op( + x, xindex, xfill, y, yindex, yfill + ) + result_int_vals, ri_index, ifill = sparse_op( + x, xdindex, xfill, y, ydindex, yfill + ) + + assert rb_index.to_int_index().equals(ri_index) + tm.assert_numpy_array_equal(result_block_vals, result_int_vals) + assert bfill == ifill + + # check versus Series... + xseries = Series(x, xdindex.indices) + xseries = xseries.reindex(np.arange(test_length)).fillna(xfill) + + yseries = Series(y, ydindex.indices) + yseries = yseries.reindex(np.arange(test_length)).fillna(yfill) + + series_result = python_op(xseries, yseries) + series_result = series_result.reindex(ri_index.indices) + + tm.assert_numpy_array_equal(result_block_vals, series_result.values) + tm.assert_numpy_array_equal(result_int_vals, series_result.values) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_reductions.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_reductions.py new file mode 100644 index 0000000000000000000000000000000000000000..f44423d5e635c3f74725db219d48fcaca27c4d53 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_reductions.py @@ -0,0 +1,306 @@ +import numpy as np +import pytest + +from pandas import ( + NaT, + SparseDtype, + Timestamp, + isna, +) +from pandas.core.arrays.sparse import SparseArray + + +class TestReductions: + @pytest.mark.parametrize( + "data,pos,neg", + [ + ([True, True, True], True, False), + ([1, 2, 1], 1, 0), + ([1.0, 2.0, 1.0], 1.0, 0.0), + ], + ) + def test_all(self, data, pos, neg): + # GH#17570 + out = SparseArray(data).all() + assert out + + out = SparseArray(data, fill_value=pos).all() + assert out + + data[1] = neg + out = SparseArray(data).all() + assert not out + + out = SparseArray(data, fill_value=pos).all() + assert not out + + @pytest.mark.parametrize( + "data,pos,neg", + [ + ([True, True, True], True, False), + ([1, 2, 1], 1, 0), + ([1.0, 2.0, 1.0], 1.0, 0.0), + ], + ) + def test_numpy_all(self, data, pos, neg): + # GH#17570 + out = np.all(SparseArray(data)) + assert out + + out = np.all(SparseArray(data, fill_value=pos)) + assert out + + data[1] = neg + out = np.all(SparseArray(data)) + assert not out + + out = np.all(SparseArray(data, fill_value=pos)) + assert not out + + # raises with a different message on py2. + msg = "the 'out' parameter is not supported" + with pytest.raises(ValueError, match=msg): + np.all(SparseArray(data), out=np.array([])) + + @pytest.mark.parametrize( + "data,pos,neg", + [ + ([False, True, False], True, False), + ([0, 2, 0], 2, 0), + ([0.0, 2.0, 0.0], 2.0, 0.0), + ], + ) + def test_any(self, data, pos, neg): + # GH#17570 + out = SparseArray(data).any() + assert out + + out = SparseArray(data, fill_value=pos).any() + assert out + + data[1] = neg + out = SparseArray(data).any() + assert not out + + out = SparseArray(data, fill_value=pos).any() + assert not out + + @pytest.mark.parametrize( + "data,pos,neg", + [ + ([False, True, False], True, False), + ([0, 2, 0], 2, 0), + ([0.0, 2.0, 0.0], 2.0, 0.0), + ], + ) + def test_numpy_any(self, data, pos, neg): + # GH#17570 + out = np.any(SparseArray(data)) + assert out + + out = np.any(SparseArray(data, fill_value=pos)) + assert out + + data[1] = neg + out = np.any(SparseArray(data)) + assert not out + + out = np.any(SparseArray(data, fill_value=pos)) + assert not out + + msg = "the 'out' parameter is not supported" + with pytest.raises(ValueError, match=msg): + np.any(SparseArray(data), out=out) + + def test_sum(self): + data = np.arange(10).astype(float) + out = SparseArray(data).sum() + assert out == 45.0 + + data[5] = np.nan + out = SparseArray(data, fill_value=2).sum() + assert out == 40.0 + + out = SparseArray(data, fill_value=np.nan).sum() + assert out == 40.0 + + @pytest.mark.parametrize( + "arr", + [np.array([0, 1, np.nan, 1]), np.array([0, 1, 1])], + ) + @pytest.mark.parametrize("fill_value", [0, 1, np.nan]) + @pytest.mark.parametrize("min_count, expected", [(3, 2), (4, np.nan)]) + def test_sum_min_count(self, arr, fill_value, min_count, expected): + # GH#25777 + sparray = SparseArray(arr, fill_value=fill_value) + result = sparray.sum(min_count=min_count) + if np.isnan(expected): + assert np.isnan(result) + else: + assert result == expected + + def test_bool_sum_min_count(self): + spar_bool = SparseArray([False, True] * 5, dtype=np.bool_, fill_value=True) + res = spar_bool.sum(min_count=1) + assert res == 5 + res = spar_bool.sum(min_count=11) + assert isna(res) + + def test_numpy_sum(self): + data = np.arange(10).astype(float) + out = np.sum(SparseArray(data)) + assert out == 45.0 + + data[5] = np.nan + out = np.sum(SparseArray(data, fill_value=2)) + assert out == 40.0 + + out = np.sum(SparseArray(data, fill_value=np.nan)) + assert out == 40.0 + + msg = "the 'dtype' parameter is not supported" + with pytest.raises(ValueError, match=msg): + np.sum(SparseArray(data), dtype=np.int64) + + msg = "the 'out' parameter is not supported" + with pytest.raises(ValueError, match=msg): + np.sum(SparseArray(data), out=out) + + def test_mean(self): + data = np.arange(10).astype(float) + out = SparseArray(data).mean() + assert out == 4.5 + + data[5] = np.nan + out = SparseArray(data).mean() + assert out == 40.0 / 9 + + def test_numpy_mean(self): + data = np.arange(10).astype(float) + out = np.mean(SparseArray(data)) + assert out == 4.5 + + data[5] = np.nan + out = np.mean(SparseArray(data)) + assert out == 40.0 / 9 + + msg = "the 'dtype' parameter is not supported" + with pytest.raises(ValueError, match=msg): + np.mean(SparseArray(data), dtype=np.int64) + + msg = "the 'out' parameter is not supported" + with pytest.raises(ValueError, match=msg): + np.mean(SparseArray(data), out=out) + + +class TestMinMax: + @pytest.mark.parametrize( + "raw_data,max_expected,min_expected", + [ + (np.arange(5.0), [4], [0]), + (-np.arange(5.0), [0], [-4]), + (np.array([0, 1, 2, np.nan, 4]), [4], [0]), + (np.array([np.nan] * 5), [np.nan], [np.nan]), + (np.array([]), [np.nan], [np.nan]), + ], + ) + def test_nan_fill_value(self, raw_data, max_expected, min_expected): + arr = SparseArray(raw_data) + max_result = arr.max() + min_result = arr.min() + assert max_result in max_expected + assert min_result in min_expected + + max_result = arr.max(skipna=False) + min_result = arr.min(skipna=False) + if np.isnan(raw_data).any(): + assert np.isnan(max_result) + assert np.isnan(min_result) + else: + assert max_result in max_expected + assert min_result in min_expected + + @pytest.mark.parametrize( + "fill_value,max_expected,min_expected", + [ + (100, 100, 0), + (-100, 1, -100), + ], + ) + def test_fill_value(self, fill_value, max_expected, min_expected): + arr = SparseArray( + np.array([fill_value, 0, 1]), dtype=SparseDtype("int", fill_value) + ) + max_result = arr.max() + assert max_result == max_expected + + min_result = arr.min() + assert min_result == min_expected + + def test_only_fill_value(self): + fv = 100 + arr = SparseArray(np.array([fv, fv, fv]), dtype=SparseDtype("int", fv)) + assert len(arr._valid_sp_values) == 0 + + assert arr.max() == fv + assert arr.min() == fv + assert arr.max(skipna=False) == fv + assert arr.min(skipna=False) == fv + + @pytest.mark.parametrize("func", ["min", "max"]) + @pytest.mark.parametrize("data", [np.array([]), np.array([np.nan, np.nan])]) + @pytest.mark.parametrize( + "dtype,expected", + [ + (SparseDtype(np.float64, np.nan), np.nan), + (SparseDtype(np.float64, 5.0), np.nan), + (SparseDtype("datetime64[ns]", NaT), NaT), + (SparseDtype("datetime64[ns]", Timestamp("2018-05-05")), NaT), + ], + ) + def test_na_value_if_no_valid_values(self, func, data, dtype, expected): + arr = SparseArray(data, dtype=dtype) + result = getattr(arr, func)() + if expected is NaT: + # TODO: pin down whether we wrap datetime64("NaT") + assert result is NaT or np.isnat(result) + else: + assert np.isnan(result) + + +class TestArgmaxArgmin: + @pytest.mark.parametrize( + "arr,argmax_expected,argmin_expected", + [ + (SparseArray([1, 2, 0, 1, 2]), 1, 2), + (SparseArray([-1, -2, 0, -1, -2]), 2, 1), + (SparseArray([np.nan, 1, 0, 0, np.nan, -1]), 1, 5), + (SparseArray([np.nan, 1, 0, 0, np.nan, 2]), 5, 2), + (SparseArray([np.nan, 1, 0, 0, np.nan, 2], fill_value=-1), 5, 2), + (SparseArray([np.nan, 1, 0, 0, np.nan, 2], fill_value=0), 5, 2), + (SparseArray([np.nan, 1, 0, 0, np.nan, 2], fill_value=1), 5, 2), + (SparseArray([np.nan, 1, 0, 0, np.nan, 2], fill_value=2), 5, 2), + (SparseArray([np.nan, 1, 0, 0, np.nan, 2], fill_value=3), 5, 2), + (SparseArray([0] * 10 + [-1], fill_value=0), 0, 10), + (SparseArray([0] * 10 + [-1], fill_value=-1), 0, 10), + (SparseArray([0] * 10 + [-1], fill_value=1), 0, 10), + (SparseArray([-1] + [0] * 10, fill_value=0), 1, 0), + (SparseArray([1] + [0] * 10, fill_value=0), 0, 1), + (SparseArray([-1] + [0] * 10, fill_value=-1), 1, 0), + (SparseArray([1] + [0] * 10, fill_value=1), 0, 1), + ], + ) + def test_argmax_argmin(self, arr, argmax_expected, argmin_expected): + argmax_result = arr.argmax() + argmin_result = arr.argmin() + assert argmax_result == argmax_expected + assert argmin_result == argmin_expected + + @pytest.mark.parametrize( + "arr,method", + [(SparseArray([]), "argmax"), (SparseArray([]), "argmin")], + ) + def test_empty_array(self, arr, method): + msg = f"attempt to get {method} of an empty sequence" + with pytest.raises(ValueError, match=msg): + arr.argmax() if method == "argmax" else arr.argmin() diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_unary.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_unary.py new file mode 100644 index 0000000000000000000000000000000000000000..c00a73773fdd4795e3d5d7f030a591a060dc3bfc --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/sparse/test_unary.py @@ -0,0 +1,79 @@ +import operator + +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm +from pandas.core.arrays import SparseArray + + +@pytest.mark.filterwarnings("ignore:invalid value encountered in cast:RuntimeWarning") +@pytest.mark.parametrize("fill_value", [0, np.nan]) +@pytest.mark.parametrize("op", [operator.pos, operator.neg]) +def test_unary_op(op, fill_value): + arr = np.array([0, 1, np.nan, 2]) + sparray = SparseArray(arr, fill_value=fill_value) + result = op(sparray) + expected = SparseArray(op(arr), fill_value=op(fill_value)) + tm.assert_sp_array_equal(result, expected) + + +@pytest.mark.parametrize("fill_value", [True, False]) +def test_invert(fill_value): + arr = np.array([True, False, False, True]) + sparray = SparseArray(arr, fill_value=fill_value) + result = ~sparray + expected = SparseArray(~arr, fill_value=not fill_value) + tm.assert_sp_array_equal(result, expected) + + result = ~pd.Series(sparray) + expected = pd.Series(expected) + tm.assert_series_equal(result, expected) + + result = ~pd.DataFrame({"A": sparray}) + expected = pd.DataFrame({"A": expected}) + tm.assert_frame_equal(result, expected) + + +class TestUnaryMethods: + @pytest.mark.filterwarnings( + "ignore:invalid value encountered in cast:RuntimeWarning" + ) + def test_neg_operator(self): + arr = SparseArray([-1, -2, np.nan, 3], fill_value=np.nan, dtype=np.int8) + res = -arr + exp = SparseArray([1, 2, np.nan, -3], fill_value=np.nan, dtype=np.int8) + tm.assert_sp_array_equal(exp, res) + + arr = SparseArray([-1, -2, 1, 3], fill_value=-1, dtype=np.int8) + res = -arr + exp = SparseArray([1, 2, -1, -3], fill_value=1, dtype=np.int8) + tm.assert_sp_array_equal(exp, res) + + @pytest.mark.filterwarnings( + "ignore:invalid value encountered in cast:RuntimeWarning" + ) + def test_abs_operator(self): + arr = SparseArray([-1, -2, np.nan, 3], fill_value=np.nan, dtype=np.int8) + res = abs(arr) + exp = SparseArray([1, 2, np.nan, 3], fill_value=np.nan, dtype=np.int8) + tm.assert_sp_array_equal(exp, res) + + arr = SparseArray([-1, -2, 1, 3], fill_value=-1, dtype=np.int8) + res = abs(arr) + exp = SparseArray([1, 2, 1, 3], fill_value=1, dtype=np.int8) + tm.assert_sp_array_equal(exp, res) + + def test_invert_operator(self): + arr = SparseArray([False, True, False, True], fill_value=False, dtype=np.bool_) + exp = SparseArray( + np.invert([False, True, False, True]), fill_value=True, dtype=np.bool_ + ) + res = ~arr + tm.assert_sp_array_equal(exp, res) + + arr = SparseArray([0, 1, 0, 2, 3, 0], fill_value=0, dtype=np.int32) + res = ~arr + exp = SparseArray([-1, -2, -1, -3, -4, -1], fill_value=-1, dtype=np.int32) + tm.assert_sp_array_equal(exp, res) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/string_/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/string_/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/string_/test_concat.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/string_/test_concat.py new file mode 100644 index 0000000000000000000000000000000000000000..320d700b2b6c340d1cb52e708aa8defcad7e60bb --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/string_/test_concat.py @@ -0,0 +1,73 @@ +import numpy as np +import pytest + +from pandas.compat import HAS_PYARROW + +from pandas.core.dtypes.cast import find_common_type + +import pandas as pd +import pandas._testing as tm +from pandas.util.version import Version + + +@pytest.mark.parametrize( + "to_concat_dtypes, result_dtype", + [ + # same types + ([("pyarrow", pd.NA), ("pyarrow", pd.NA)], ("pyarrow", pd.NA)), + ([("pyarrow", np.nan), ("pyarrow", np.nan)], ("pyarrow", np.nan)), + ([("python", pd.NA), ("python", pd.NA)], ("python", pd.NA)), + ([("python", np.nan), ("python", np.nan)], ("python", np.nan)), + # pyarrow preference + ([("pyarrow", pd.NA), ("python", pd.NA)], ("pyarrow", pd.NA)), + # NA preference + ([("python", pd.NA), ("python", np.nan)], ("python", pd.NA)), + ], +) +def test_concat_series(request, to_concat_dtypes, result_dtype): + if any(storage == "pyarrow" for storage, _ in to_concat_dtypes) and not HAS_PYARROW: + pytest.skip("Could not import 'pyarrow'") + + ser_list = [ + pd.Series(["a", "b", None], dtype=pd.StringDtype(storage, na_value)) + for storage, na_value in to_concat_dtypes + ] + + result = pd.concat(ser_list, ignore_index=True) + expected = pd.Series( + ["a", "b", None, "a", "b", None], dtype=pd.StringDtype(*result_dtype) + ) + tm.assert_series_equal(result, expected) + + # order doesn't matter for result + result = pd.concat(ser_list[::1], ignore_index=True) + tm.assert_series_equal(result, expected) + + +def test_concat_with_object(string_dtype_arguments): + # _get_common_dtype cannot inspect values, so object dtype with strings still + # results in object dtype + result = pd.concat( + [ + pd.Series(["a", "b", None], dtype=pd.StringDtype(*string_dtype_arguments)), + pd.Series(["a", "b", None], dtype=object), + ] + ) + assert result.dtype == np.dtype("object") + + +def test_concat_with_numpy(string_dtype_arguments): + # common type with a numpy string dtype always preserves the pandas string dtype + dtype = pd.StringDtype(*string_dtype_arguments) + assert find_common_type([dtype, np.dtype("U")]) == dtype + assert find_common_type([np.dtype("U"), dtype]) == dtype + assert find_common_type([dtype, np.dtype("U10")]) == dtype + assert find_common_type([np.dtype("U10"), dtype]) == dtype + + # with any other numpy dtype -> object + assert find_common_type([dtype, np.dtype("S")]) == np.dtype("object") + assert find_common_type([dtype, np.dtype("int64")]) == np.dtype("object") + + if Version(np.__version__) >= Version("2"): + assert find_common_type([dtype, np.dtypes.StringDType()]) == dtype + assert find_common_type([np.dtypes.StringDType(), dtype]) == dtype diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/string_/test_string.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/string_/test_string.py new file mode 100644 index 0000000000000000000000000000000000000000..b468480cf5f865461c196756c979c8dfd9fa4b2b --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/string_/test_string.py @@ -0,0 +1,893 @@ +""" +This module tests the functionality of StringArray and ArrowStringArray. +Tests for the str accessors are in pandas/tests/strings/test_string_array.py +""" +import operator + +import numpy as np +import pytest + +from pandas._config import using_string_dtype + +from pandas.compat import HAS_PYARROW +from pandas.compat.pyarrow import ( + pa_version_under12p0, + pa_version_under19p0, +) +import pandas.util._test_decorators as td + +from pandas.core.dtypes.common import is_dtype_equal + +import pandas as pd +import pandas._testing as tm +from pandas.core.arrays.string_ import StringArrayNumpySemantics +from pandas.core.arrays.string_arrow import ( + ArrowStringArray, + ArrowStringArrayNumpySemantics, +) + + +@pytest.fixture +def dtype(string_dtype_arguments): + """Fixture giving StringDtype from parametrized storage and na_value arguments""" + storage, na_value = string_dtype_arguments + return pd.StringDtype(storage=storage, na_value=na_value) + + +@pytest.fixture +def dtype2(string_dtype_arguments2): + storage, na_value = string_dtype_arguments2 + return pd.StringDtype(storage=storage, na_value=na_value) + + +@pytest.fixture +def cls(dtype): + """Fixture giving array type from parametrized 'dtype'""" + return dtype.construct_array_type() + + +def string_dtype_highest_priority(dtype1, dtype2): + if HAS_PYARROW: + DTYPE_HIERARCHY = [ + pd.StringDtype("python", na_value=np.nan), + pd.StringDtype("pyarrow", na_value=np.nan), + pd.StringDtype("python", na_value=pd.NA), + pd.StringDtype("pyarrow", na_value=pd.NA), + ] + else: + DTYPE_HIERARCHY = [ + pd.StringDtype("python", na_value=np.nan), + pd.StringDtype("python", na_value=pd.NA), + ] + + h1 = DTYPE_HIERARCHY.index(dtype1) + h2 = DTYPE_HIERARCHY.index(dtype2) + return DTYPE_HIERARCHY[max(h1, h2)] + + +def test_dtype_constructor(): + pytest.importorskip("pyarrow") + + with tm.assert_produces_warning(FutureWarning): + dtype = pd.StringDtype("pyarrow_numpy") + assert dtype == pd.StringDtype("pyarrow", na_value=np.nan) + + +def test_dtype_equality(): + pytest.importorskip("pyarrow") + + dtype1 = pd.StringDtype("python") + dtype2 = pd.StringDtype("pyarrow") + dtype3 = pd.StringDtype("pyarrow", na_value=np.nan) + + assert dtype1 == pd.StringDtype("python", na_value=pd.NA) + assert dtype1 != dtype2 + assert dtype1 != dtype3 + + assert dtype2 == pd.StringDtype("pyarrow", na_value=pd.NA) + assert dtype2 != dtype1 + assert dtype2 != dtype3 + + assert dtype3 == pd.StringDtype("pyarrow", na_value=np.nan) + assert dtype3 == pd.StringDtype("pyarrow", na_value=float("nan")) + assert dtype3 != dtype1 + assert dtype3 != dtype2 + + +def test_repr(dtype): + df = pd.DataFrame({"A": pd.array(["a", pd.NA, "b"], dtype=dtype)}) + if dtype.na_value is np.nan: + expected = " A\n0 a\n1 NaN\n2 b" + else: + expected = " A\n0 a\n1 \n2 b" + assert repr(df) == expected + + if dtype.na_value is np.nan: + expected = "0 a\n1 NaN\n2 b\nName: A, dtype: str" + else: + expected = "0 a\n1 \n2 b\nName: A, dtype: string" + assert repr(df.A) == expected + + if dtype.storage == "pyarrow" and dtype.na_value is pd.NA: + arr_name = "ArrowStringArray" + expected = f"<{arr_name}>\n['a', , 'b']\nLength: 3, dtype: string" + elif dtype.storage == "pyarrow" and dtype.na_value is np.nan: + arr_name = "ArrowStringArrayNumpySemantics" + expected = f"<{arr_name}>\n['a', nan, 'b']\nLength: 3, dtype: str" + elif dtype.storage == "python" and dtype.na_value is np.nan: + arr_name = "StringArrayNumpySemantics" + expected = f"<{arr_name}>\n['a', nan, 'b']\nLength: 3, dtype: str" + else: + arr_name = "StringArray" + expected = f"<{arr_name}>\n['a', , 'b']\nLength: 3, dtype: string" + assert repr(df.A.array) == expected + + +def test_dtype_repr(dtype): + if dtype.storage == "pyarrow": + if dtype.na_value is pd.NA: + assert repr(dtype) == "string[pyarrow]" + else: + assert repr(dtype) == "" + elif dtype.na_value is pd.NA: + assert repr(dtype) == "string[python]" + else: + assert repr(dtype) == "" + + +def test_none_to_nan(cls, dtype): + a = cls._from_sequence(["a", None, "b"], dtype=dtype) + assert a[1] is not None + assert a[1] is a.dtype.na_value + + +def test_setitem_validates(cls, dtype): + arr = cls._from_sequence(["a", "b"], dtype=dtype) + + msg = "Invalid value '10' for dtype 'str" + with pytest.raises(TypeError, match=msg): + arr[0] = 10 + + msg = "Invalid value for dtype 'str" + with pytest.raises(TypeError, match=msg): + arr[:] = np.array([1, 2]) + + +def test_setitem_with_scalar_string(dtype): + # is_float_dtype considers some strings, like 'd', to be floats + # which can cause issues. + arr = pd.array(["a", "c"], dtype=dtype) + arr[0] = "d" + expected = pd.array(["d", "c"], dtype=dtype) + tm.assert_extension_array_equal(arr, expected) + + +def test_setitem_with_array_with_missing(dtype): + # ensure that when setting with an array of values, we don't mutate the + # array `value` in __setitem__(self, key, value) + arr = pd.array(["a", "b", "c"], dtype=dtype) + value = np.array(["A", None]) + value_orig = value.copy() + arr[[0, 1]] = value + + expected = pd.array(["A", pd.NA, "c"], dtype=dtype) + tm.assert_extension_array_equal(arr, expected) + tm.assert_numpy_array_equal(value, value_orig) + + +def test_astype_roundtrip(dtype): + ser = pd.Series(pd.date_range("2000", periods=12)) + ser[0] = None + + casted = ser.astype(dtype) + assert is_dtype_equal(casted.dtype, dtype) + + result = casted.astype("datetime64[ns]") + tm.assert_series_equal(result, ser) + + # GH#38509 same thing for timedelta64 + ser2 = ser - ser.iloc[-1] + casted2 = ser2.astype(dtype) + assert is_dtype_equal(casted2.dtype, dtype) + + result2 = casted2.astype(ser2.dtype) + tm.assert_series_equal(result2, ser2) + + +def test_add(dtype): + a = pd.Series(["a", "b", "c", None, None], dtype=dtype) + b = pd.Series(["x", "y", None, "z", None], dtype=dtype) + + result = a + b + expected = pd.Series(["ax", "by", None, None, None], dtype=dtype) + tm.assert_series_equal(result, expected) + + result = a.add(b) + tm.assert_series_equal(result, expected) + + result = a.radd(b) + expected = pd.Series(["xa", "yb", None, None, None], dtype=dtype) + tm.assert_series_equal(result, expected) + + result = a.add(b, fill_value="-") + expected = pd.Series(["ax", "by", "c-", "-z", None], dtype=dtype) + tm.assert_series_equal(result, expected) + + +def test_add_2d(dtype, request): + if dtype.storage == "pyarrow": + reason = "Failed: DID NOT RAISE " + mark = pytest.mark.xfail(raises=None, reason=reason) + request.applymarker(mark) + + a = pd.array(["a", "b", "c"], dtype=dtype) + b = np.array([["a", "b", "c"]], dtype=object) + with pytest.raises(ValueError, match="3 != 1"): + a + b + + s = pd.Series(a) + with pytest.raises(ValueError, match="3 != 1"): + s + b + + +def test_add_sequence(dtype): + a = pd.array(["a", "b", None, None], dtype=dtype) + other = ["x", None, "y", None] + + result = a + other + expected = pd.array(["ax", None, None, None], dtype=dtype) + tm.assert_extension_array_equal(result, expected) + + result = other + a + expected = pd.array(["xa", None, None, None], dtype=dtype) + tm.assert_extension_array_equal(result, expected) + + +def test_mul(dtype): + a = pd.array(["a", "b", None], dtype=dtype) + result = a * 2 + expected = pd.array(["aa", "bb", None], dtype=dtype) + tm.assert_extension_array_equal(result, expected) + + result = 2 * a + tm.assert_extension_array_equal(result, expected) + + +@pytest.mark.xfail(reason="GH-28527") +def test_add_strings(dtype): + arr = pd.array(["a", "b", "c", "d"], dtype=dtype) + df = pd.DataFrame([["t", "y", "v", "w"]], dtype=object) + assert arr.__add__(df) is NotImplemented + + result = arr + df + expected = pd.DataFrame([["at", "by", "cv", "dw"]]).astype(dtype) + tm.assert_frame_equal(result, expected) + + result = df + arr + expected = pd.DataFrame([["ta", "yb", "vc", "wd"]]).astype(dtype) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.xfail(reason="GH-28527") +def test_add_frame(dtype): + arr = pd.array(["a", "b", np.nan, np.nan], dtype=dtype) + df = pd.DataFrame([["x", np.nan, "y", np.nan]]) + + assert arr.__add__(df) is NotImplemented + + result = arr + df + expected = pd.DataFrame([["ax", np.nan, np.nan, np.nan]]).astype(dtype) + tm.assert_frame_equal(result, expected) + + result = df + arr + expected = pd.DataFrame([["xa", np.nan, np.nan, np.nan]]).astype(dtype) + tm.assert_frame_equal(result, expected) + + +def test_comparison_methods_scalar(comparison_op, dtype): + op_name = f"__{comparison_op.__name__}__" + a = pd.array(["a", None, "c"], dtype=dtype) + other = "a" + result = getattr(a, op_name)(other) + if dtype.na_value is np.nan: + expected = np.array([getattr(item, op_name)(other) for item in a]) + if comparison_op == operator.ne: + expected[1] = True + else: + expected[1] = False + tm.assert_numpy_array_equal(result, expected.astype(np.bool_)) + else: + expected_dtype = "boolean[pyarrow]" if dtype.storage == "pyarrow" else "boolean" + expected = np.array([getattr(item, op_name)(other) for item in a], dtype=object) + expected = pd.array(expected, dtype=expected_dtype) + tm.assert_extension_array_equal(result, expected) + + +def test_comparison_methods_scalar_pd_na(comparison_op, dtype): + op_name = f"__{comparison_op.__name__}__" + a = pd.array(["a", None, "c"], dtype=dtype) + result = getattr(a, op_name)(pd.NA) + + if dtype.na_value is np.nan: + if operator.ne == comparison_op: + expected = np.array([True, True, True]) + else: + expected = np.array([False, False, False]) + tm.assert_numpy_array_equal(result, expected) + else: + expected_dtype = "boolean[pyarrow]" if dtype.storage == "pyarrow" else "boolean" + expected = pd.array([None, None, None], dtype=expected_dtype) + tm.assert_extension_array_equal(result, expected) + tm.assert_extension_array_equal(result, expected) + + +def test_comparison_methods_scalar_not_string(comparison_op, dtype): + op_name = f"__{comparison_op.__name__}__" + + a = pd.array(["a", None, "c"], dtype=dtype) + other = 42 + + if op_name not in ["__eq__", "__ne__"]: + with pytest.raises(TypeError, match="Invalid comparison|not supported between"): + getattr(a, op_name)(other) + + return + + result = getattr(a, op_name)(other) + + if dtype.na_value is np.nan: + expected_data = { + "__eq__": [False, False, False], + "__ne__": [True, True, True], + }[op_name] + expected = np.array(expected_data) + tm.assert_numpy_array_equal(result, expected) + else: + expected_data = {"__eq__": [False, None, False], "__ne__": [True, None, True]}[ + op_name + ] + expected_dtype = "boolean[pyarrow]" if dtype.storage == "pyarrow" else "boolean" + expected = pd.array(expected_data, dtype=expected_dtype) + tm.assert_extension_array_equal(result, expected) + + +def test_comparison_methods_array(comparison_op, dtype, dtype2): + op_name = f"__{comparison_op.__name__}__" + + a = pd.array(["a", None, "c"], dtype=dtype) + other = pd.array([None, None, "c"], dtype=dtype2) + result = comparison_op(a, other) + + # ensure operation is commutative + result2 = comparison_op(other, a) + tm.assert_equal(result, result2) + + if dtype.na_value is np.nan and dtype2.na_value is np.nan: + if operator.ne == comparison_op: + expected = np.array([True, True, False]) + else: + expected = np.array([False, False, False]) + expected[-1] = getattr(other[-1], op_name)(a[-1]) + tm.assert_numpy_array_equal(result, expected) + + else: + max_dtype = string_dtype_highest_priority(dtype, dtype2) + if max_dtype.storage == "python": + expected_dtype = "boolean" + else: + expected_dtype = "bool[pyarrow]" + + expected = np.full(len(a), fill_value=None, dtype="object") + expected[-1] = getattr(other[-1], op_name)(a[-1]) + expected = pd.array(expected, dtype=expected_dtype) + tm.assert_extension_array_equal(result, expected) + + +@td.skip_if_no("pyarrow") +def test_comparison_methods_array_arrow_extension(comparison_op, dtype2): + # Test pd.ArrowDtype(pa.string()) against other string arrays + import pyarrow as pa + + op_name = f"__{comparison_op.__name__}__" + dtype = pd.ArrowDtype(pa.string()) + a = pd.array(["a", None, "c"], dtype=dtype) + other = pd.array([None, None, "c"], dtype=dtype2) + result = comparison_op(a, other) + + # ensure operation is commutative + result2 = comparison_op(other, a) + tm.assert_equal(result, result2) + + expected = pd.array([None, None, True], dtype="bool[pyarrow]") + expected[-1] = getattr(other[-1], op_name)(a[-1]) + tm.assert_extension_array_equal(result, expected) + + +def test_comparison_methods_list(comparison_op, dtype): + op_name = f"__{comparison_op.__name__}__" + + a = pd.array(["a", None, "c"], dtype=dtype) + other = [None, None, "c"] + result = comparison_op(a, other) + + # ensure operation is commutative + result2 = comparison_op(other, a) + tm.assert_equal(result, result2) + + if dtype.na_value is np.nan: + if operator.ne == comparison_op: + expected = np.array([True, True, False]) + else: + expected = np.array([False, False, False]) + expected[-1] = getattr(other[-1], op_name)(a[-1]) + tm.assert_numpy_array_equal(result, expected) + + else: + expected_dtype = "boolean[pyarrow]" if dtype.storage == "pyarrow" else "boolean" + expected = np.full(len(a), fill_value=None, dtype="object") + expected[-1] = getattr(other[-1], op_name)(a[-1]) + expected = pd.array(expected, dtype=expected_dtype) + tm.assert_extension_array_equal(result, expected) + + +def test_constructor_raises(cls): + if cls is pd.arrays.StringArray: + msg = "StringArray requires a sequence of strings or pandas.NA" + elif cls is StringArrayNumpySemantics: + msg = "StringArrayNumpySemantics requires a sequence of strings or NaN" + else: + msg = "Unsupported type '' for ArrowExtensionArray" + + with pytest.raises(ValueError, match=msg): + cls(np.array(["a", "b"], dtype="S1")) + + with pytest.raises(ValueError, match=msg): + cls(np.array([])) + + if cls is pd.arrays.StringArray or cls is StringArrayNumpySemantics: + # GH#45057 np.nan and None do NOT raise, as they are considered valid NAs + # for string dtype + cls(np.array(["a", np.nan], dtype=object)) + cls(np.array(["a", None], dtype=object)) + else: + with pytest.raises(ValueError, match=msg): + cls(np.array(["a", np.nan], dtype=object)) + with pytest.raises(ValueError, match=msg): + cls(np.array(["a", None], dtype=object)) + + with pytest.raises(ValueError, match=msg): + cls(np.array(["a", pd.NaT], dtype=object)) + + with pytest.raises(ValueError, match=msg): + cls(np.array(["a", np.datetime64("NaT", "ns")], dtype=object)) + + with pytest.raises(ValueError, match=msg): + cls(np.array(["a", np.timedelta64("NaT", "ns")], dtype=object)) + + +@pytest.mark.parametrize("na", [np.nan, np.float64("nan"), float("nan"), None, pd.NA]) +def test_constructor_nan_like(na): + expected = pd.arrays.StringArray(np.array(["a", pd.NA])) + tm.assert_extension_array_equal( + pd.arrays.StringArray(np.array(["a", na], dtype="object")), expected + ) + + +@pytest.mark.parametrize("copy", [True, False]) +def test_from_sequence_no_mutate(copy, cls, dtype): + nan_arr = np.array(["a", np.nan], dtype=object) + expected_input = nan_arr.copy() + na_arr = np.array(["a", pd.NA], dtype=object) + + result = cls._from_sequence(nan_arr, dtype=dtype, copy=copy) + + if cls in (ArrowStringArray, ArrowStringArrayNumpySemantics): + import pyarrow as pa + + expected = cls(pa.array(na_arr, type=pa.string(), from_pandas=True)) + elif cls is StringArrayNumpySemantics: + expected = cls(nan_arr) + else: + expected = cls(na_arr) + + tm.assert_extension_array_equal(result, expected) + tm.assert_numpy_array_equal(nan_arr, expected_input) + + +def test_astype_int(dtype): + arr = pd.array(["1", "2", "3"], dtype=dtype) + result = arr.astype("int64") + expected = np.array([1, 2, 3], dtype="int64") + tm.assert_numpy_array_equal(result, expected) + + arr = pd.array(["1", pd.NA, "3"], dtype=dtype) + if dtype.na_value is np.nan: + err = ValueError + msg = "cannot convert float NaN to integer" + else: + err = TypeError + msg = ( + r"int\(\) argument must be a string, a bytes-like " + r"object or a( real)? number" + ) + with pytest.raises(err, match=msg): + arr.astype("int64") + + +def test_astype_nullable_int(dtype): + arr = pd.array(["1", pd.NA, "3"], dtype=dtype) + + result = arr.astype("Int64") + expected = pd.array([1, pd.NA, 3], dtype="Int64") + tm.assert_extension_array_equal(result, expected) + + +def test_astype_float(dtype, any_float_dtype): + # Don't compare arrays (37974) + ser = pd.Series(["1.1", pd.NA, "3.3"], dtype=dtype) + result = ser.astype(any_float_dtype) + expected = pd.Series([1.1, np.nan, 3.3], dtype=any_float_dtype) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("skipna", [True, False]) +def test_reduce(skipna, dtype): + arr = pd.Series(["a", "b", "c"], dtype=dtype) + result = arr.sum(skipna=skipna) + assert result == "abc" + + +@pytest.mark.parametrize("skipna", [True, False]) +def test_reduce_missing(skipna, dtype): + arr = pd.Series([None, "a", None, "b", "c", None], dtype=dtype) + result = arr.sum(skipna=skipna) + if skipna: + assert result == "abc" + else: + assert pd.isna(result) + + +@pytest.mark.parametrize("method", ["min", "max"]) +@pytest.mark.parametrize("skipna", [True, False]) +def test_min_max(method, skipna, dtype): + arr = pd.Series(["a", "b", "c", None], dtype=dtype) + result = getattr(arr, method)(skipna=skipna) + if skipna: + expected = "a" if method == "min" else "c" + assert result == expected + else: + assert result is arr.dtype.na_value + + +@pytest.mark.parametrize("method", ["min", "max"]) +@pytest.mark.parametrize("box", [pd.Series, pd.array]) +def test_min_max_numpy(method, box, dtype, request): + if dtype.storage == "pyarrow" and box is pd.array: + if box is pd.array: + reason = "'<=' not supported between instances of 'str' and 'NoneType'" + else: + reason = "'ArrowStringArray' object has no attribute 'max'" + mark = pytest.mark.xfail(raises=TypeError, reason=reason) + request.applymarker(mark) + + arr = box(["a", "b", "c", None], dtype=dtype) + result = getattr(np, method)(arr) + expected = "a" if method == "min" else "c" + assert result == expected + + +def test_fillna_args(dtype): + # GH 37987 + + arr = pd.array(["a", pd.NA], dtype=dtype) + + res = arr.fillna(value="b") + expected = pd.array(["a", "b"], dtype=dtype) + tm.assert_extension_array_equal(res, expected) + + res = arr.fillna(value=np.str_("b")) + expected = pd.array(["a", "b"], dtype=dtype) + tm.assert_extension_array_equal(res, expected) + + msg = "Invalid value '1' for dtype 'str" + with pytest.raises(TypeError, match=msg): + arr.fillna(value=1) + + +def test_arrow_array(dtype): + # protocol added in 0.15.0 + pa = pytest.importorskip("pyarrow") + import pyarrow.compute as pc + + data = pd.array(["a", "b", "c"], dtype=dtype) + arr = pa.array(data) + expected = pa.array(list(data), type=pa.large_string(), from_pandas=True) + if dtype.storage == "pyarrow" and pa_version_under12p0: + expected = pa.chunked_array(expected) + if dtype.storage == "python": + expected = pc.cast(expected, pa.string()) + assert arr.equals(expected) + + +@pytest.mark.filterwarnings("ignore:Passing a BlockManager:DeprecationWarning") +def test_arrow_roundtrip(dtype, string_storage, using_infer_string): + # roundtrip possible from arrow 1.0.0 + pa = pytest.importorskip("pyarrow") + + data = pd.array(["a", "b", None], dtype=dtype) + df = pd.DataFrame({"a": data}) + table = pa.table(df) + if dtype.storage == "python": + assert table.field("a").type == "string" + else: + assert table.field("a").type == "large_string" + with pd.option_context("string_storage", string_storage): + result = table.to_pandas() + if dtype.na_value is np.nan and not using_infer_string: + assert result["a"].dtype == "object" + else: + assert isinstance(result["a"].dtype, pd.StringDtype) + expected = df.astype(pd.StringDtype(string_storage, na_value=dtype.na_value)) + if using_infer_string: + expected.columns = expected.columns.astype( + pd.StringDtype(string_storage, na_value=np.nan) + ) + tm.assert_frame_equal(result, expected) + # ensure the missing value is represented by NA and not np.nan or None + assert result.loc[2, "a"] is result["a"].dtype.na_value + + +@pytest.mark.filterwarnings("ignore:Passing a BlockManager:DeprecationWarning") +def test_arrow_from_string(using_infer_string): + # not roundtrip, but starting with pyarrow table without pandas metadata + pa = pytest.importorskip("pyarrow") + table = pa.table({"a": pa.array(["a", "b", None], type=pa.string())}) + + result = table.to_pandas() + + if using_infer_string and not pa_version_under19p0: + expected = pd.DataFrame({"a": ["a", "b", None]}, dtype="str") + else: + expected = pd.DataFrame({"a": ["a", "b", None]}, dtype="object") + tm.assert_frame_equal(result, expected) + + +@pytest.mark.filterwarnings("ignore:Passing a BlockManager:DeprecationWarning") +def test_arrow_load_from_zero_chunks(dtype, string_storage, using_infer_string): + # GH-41040 + pa = pytest.importorskip("pyarrow") + + data = pd.array([], dtype=dtype) + df = pd.DataFrame({"a": data}) + table = pa.table(df) + if dtype.storage == "python": + assert table.field("a").type == "string" + else: + assert table.field("a").type == "large_string" + # Instantiate the same table with no chunks at all + table = pa.table([pa.chunked_array([], type=pa.string())], schema=table.schema) + with pd.option_context("string_storage", string_storage): + result = table.to_pandas() + + if dtype.na_value is np.nan and not using_string_dtype(): + assert result["a"].dtype == "object" + else: + assert isinstance(result["a"].dtype, pd.StringDtype) + expected = df.astype(pd.StringDtype(string_storage, na_value=dtype.na_value)) + if using_infer_string: + expected.columns = expected.columns.astype( + pd.StringDtype(string_storage, na_value=np.nan) + ) + tm.assert_frame_equal(result, expected) + + +def test_value_counts_na(dtype): + if dtype.na_value is np.nan: + exp_dtype = "int64" + elif dtype.storage == "pyarrow": + exp_dtype = "int64[pyarrow]" + else: + exp_dtype = "Int64" + arr = pd.array(["a", "b", "a", pd.NA], dtype=dtype) + result = arr.value_counts(dropna=False) + expected = pd.Series([2, 1, 1], index=arr[[0, 1, 3]], dtype=exp_dtype, name="count") + tm.assert_series_equal(result, expected) + + result = arr.value_counts(dropna=True) + expected = pd.Series([2, 1], index=arr[:2], dtype=exp_dtype, name="count") + tm.assert_series_equal(result, expected) + + +def test_value_counts_with_normalize(dtype): + if dtype.na_value is np.nan: + exp_dtype = np.float64 + elif dtype.storage == "pyarrow": + exp_dtype = "double[pyarrow]" + else: + exp_dtype = "Float64" + ser = pd.Series(["a", "b", "a", pd.NA], dtype=dtype) + result = ser.value_counts(normalize=True) + expected = pd.Series([2, 1], index=ser[:2], dtype=exp_dtype, name="proportion") / 3 + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "values, expected", + [ + (["a", "b", "c"], np.array([False, False, False])), + (["a", "b", None], np.array([False, False, True])), + ], +) +def test_use_inf_as_na(values, expected, dtype): + # https://github.com/pandas-dev/pandas/issues/33655 + values = pd.array(values, dtype=dtype) + msg = "use_inf_as_na option is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + with pd.option_context("mode.use_inf_as_na", True): + result = values.isna() + tm.assert_numpy_array_equal(result, expected) + + result = pd.Series(values).isna() + expected = pd.Series(expected) + tm.assert_series_equal(result, expected) + + result = pd.DataFrame(values).isna() + expected = pd.DataFrame(expected) + tm.assert_frame_equal(result, expected) + + +def test_value_counts_sort_false(dtype): + if dtype.na_value is np.nan: + exp_dtype = "int64" + elif dtype.storage == "pyarrow": + exp_dtype = "int64[pyarrow]" + else: + exp_dtype = "Int64" + ser = pd.Series(["a", "b", "c", "b"], dtype=dtype) + result = ser.value_counts(sort=False) + expected = pd.Series([1, 2, 1], index=ser[:3], dtype=exp_dtype, name="count") + tm.assert_series_equal(result, expected) + + +def test_memory_usage(dtype): + # GH 33963 + + if dtype.storage == "pyarrow": + pytest.skip(f"not applicable for {dtype.storage}") + + series = pd.Series(["a", "b", "c"], dtype=dtype) + + assert 0 < series.nbytes <= series.memory_usage() < series.memory_usage(deep=True) + + +@pytest.mark.parametrize("float_dtype", [np.float16, np.float32, np.float64]) +def test_astype_from_float_dtype(float_dtype, dtype): + # https://github.com/pandas-dev/pandas/issues/36451 + ser = pd.Series([0.1], dtype=float_dtype) + result = ser.astype(dtype) + expected = pd.Series(["0.1"], dtype=dtype) + tm.assert_series_equal(result, expected) + + +def test_to_numpy_returns_pdna_default(dtype): + arr = pd.array(["a", pd.NA, "b"], dtype=dtype) + result = np.array(arr) + expected = np.array(["a", dtype.na_value, "b"], dtype=object) + tm.assert_numpy_array_equal(result, expected) + + +def test_to_numpy_na_value(dtype, nulls_fixture): + na_value = nulls_fixture + arr = pd.array(["a", pd.NA, "b"], dtype=dtype) + result = arr.to_numpy(na_value=na_value) + expected = np.array(["a", na_value, "b"], dtype=object) + tm.assert_numpy_array_equal(result, expected) + + +def test_isin(dtype, fixed_now_ts): + s = pd.Series(["a", "b", None], dtype=dtype) + + result = s.isin(["a", "c"]) + expected = pd.Series([True, False, False]) + tm.assert_series_equal(result, expected) + + result = s.isin(["a", pd.NA]) + expected = pd.Series([True, False, True]) + tm.assert_series_equal(result, expected) + + result = s.isin([]) + expected = pd.Series([False, False, False]) + tm.assert_series_equal(result, expected) + + result = s.isin(["a", fixed_now_ts]) + expected = pd.Series([True, False, False]) + tm.assert_series_equal(result, expected) + + result = s.isin([fixed_now_ts]) + expected = pd.Series([False, False, False]) + tm.assert_series_equal(result, expected) + + +def test_isin_string_array(dtype, dtype2): + s = pd.Series(["a", "b", None], dtype=dtype) + + result = s.isin(pd.array(["a", "c"], dtype=dtype2)) + expected = pd.Series([True, False, False]) + tm.assert_series_equal(result, expected) + + result = s.isin(pd.array(["a", None], dtype=dtype2)) + expected = pd.Series([True, False, True]) + tm.assert_series_equal(result, expected) + + +def test_isin_arrow_string_array(dtype): + pa = pytest.importorskip("pyarrow") + s = pd.Series(["a", "b", None], dtype=dtype) + + result = s.isin(pd.array(["a", "c"], dtype=pd.ArrowDtype(pa.string()))) + expected = pd.Series([True, False, False]) + tm.assert_series_equal(result, expected) + + result = s.isin(pd.array(["a", None], dtype=pd.ArrowDtype(pa.string()))) + expected = pd.Series([True, False, True]) + tm.assert_series_equal(result, expected) + + +def test_setitem_scalar_with_mask_validation(dtype): + # https://github.com/pandas-dev/pandas/issues/47628 + # setting None with a boolean mask (through _putmaks) should still result + # in pd.NA values in the underlying array + ser = pd.Series(["a", "b", "c"], dtype=dtype) + mask = np.array([False, True, False]) + + ser[mask] = None + assert ser.array[1] is ser.dtype.na_value + + # for other non-string we should also raise an error + ser = pd.Series(["a", "b", "c"], dtype=dtype) + msg = "Invalid value '1' for dtype 'str" + with pytest.raises(TypeError, match=msg): + ser[mask] = 1 + + +def test_from_numpy_str(dtype): + vals = ["a", "b", "c"] + arr = np.array(vals, dtype=np.str_) + result = pd.array(arr, dtype=dtype) + expected = pd.array(vals, dtype=dtype) + tm.assert_extension_array_equal(result, expected) + + +def test_tolist(dtype): + vals = ["a", "b", "c"] + arr = pd.array(vals, dtype=dtype) + result = arr.tolist() + expected = vals + tm.assert_equal(result, expected) + + +@pytest.mark.parametrize("box", [pd.Series, pd.array]) +def test_numpy_array_ufunc(dtype, box): + arr = box(["a", "bb", "ccc"], dtype=dtype) + + # custom ufunc that works with string (object) input -> returning numeric + str_len_ufunc = np.frompyfunc(lambda x: len(x), 1, 1) + result = str_len_ufunc(arr) + expected_cls = pd.Series if box is pd.Series else np.array + # TODO we should infer int64 dtype here? + expected = expected_cls([1, 2, 3], dtype=object) + tm.assert_equal(result, expected) + + # custom ufunc returning strings + str_multiply_ufunc = np.frompyfunc(lambda x: x * 2, 1, 1) + result = str_multiply_ufunc(arr) + expected = box(["aa", "bbbb", "cccccc"], dtype=dtype) + if dtype.storage == "pyarrow": + # TODO ArrowStringArray should also preserve the class / dtype + if box is pd.array: + expected = np.array(["aa", "bbbb", "cccccc"], dtype=object) + else: + # not specifying the dtype because the exact dtype is not yet preserved + expected = pd.Series(["aa", "bbbb", "cccccc"]) + + tm.assert_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/string_/test_string_arrow.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/string_/test_string_arrow.py new file mode 100644 index 0000000000000000000000000000000000000000..aa87f5fc0f49a07b40174ef7aad5b12349d28a5b --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/string_/test_string_arrow.py @@ -0,0 +1,282 @@ +import pickle +import re + +import numpy as np +import pytest + +import pandas.util._test_decorators as td + +import pandas as pd +import pandas._testing as tm +from pandas.core.arrays.string_ import ( + StringArray, + StringDtype, +) +from pandas.core.arrays.string_arrow import ( + ArrowStringArray, + ArrowStringArrayNumpySemantics, +) + + +def test_eq_all_na(): + pytest.importorskip("pyarrow") + a = pd.array([pd.NA, pd.NA], dtype=StringDtype("pyarrow")) + result = a == a + expected = pd.array([pd.NA, pd.NA], dtype="boolean[pyarrow]") + tm.assert_extension_array_equal(result, expected) + + +def test_config(string_storage, using_infer_string): + # with the default string_storage setting + # always "python" at the moment + assert StringDtype().storage == "python" + + with pd.option_context("string_storage", string_storage): + assert StringDtype().storage == string_storage + result = pd.array(["a", "b"]) + assert result.dtype.storage == string_storage + + # pd.array(..) by default always returns the NA-variant + dtype = StringDtype(string_storage, na_value=pd.NA) + expected = dtype.construct_array_type()._from_sequence(["a", "b"], dtype=dtype) + tm.assert_equal(result, expected) + + +def test_config_bad_storage_raises(): + msg = re.escape("Value must be one of python|pyarrow") + with pytest.raises(ValueError, match=msg): + pd.options.mode.string_storage = "foo" + + +@pytest.mark.parametrize("chunked", [True, False]) +@pytest.mark.parametrize("array_lib", ["numpy", "pyarrow"]) +def test_constructor_not_string_type_raises(array_lib, chunked): + pa = pytest.importorskip("pyarrow") + + array_lib = pa if array_lib == "pyarrow" else np + + arr = array_lib.array([1, 2, 3]) + if chunked: + if array_lib is np: + pytest.skip("chunked not applicable to numpy array") + arr = pa.chunked_array(arr) + if array_lib is np: + msg = "Unsupported type '' for ArrowExtensionArray" + else: + msg = re.escape( + "ArrowStringArray requires a PyArrow (chunked) array of large_string type" + ) + with pytest.raises(ValueError, match=msg): + ArrowStringArray(arr) + + +@pytest.mark.parametrize("chunked", [True, False]) +def test_constructor_not_string_type_value_dictionary_raises(chunked): + pa = pytest.importorskip("pyarrow") + + arr = pa.array([1, 2, 3], pa.dictionary(pa.int32(), pa.int32())) + if chunked: + arr = pa.chunked_array(arr) + + msg = re.escape( + "ArrowStringArray requires a PyArrow (chunked) array of large_string type" + ) + with pytest.raises(ValueError, match=msg): + ArrowStringArray(arr) + + +@pytest.mark.parametrize("string_type", ["string", "large_string"]) +@pytest.mark.parametrize("chunked", [True, False]) +def test_constructor_valid_string_type_value_dictionary(string_type, chunked): + pa = pytest.importorskip("pyarrow") + + arr = pa.array(["1", "2", "3"], getattr(pa, string_type)()).dictionary_encode() + if chunked: + arr = pa.chunked_array(arr) + + arr = ArrowStringArray(arr) + # dictionary type get converted to dense large string array + assert pa.types.is_large_string(arr._pa_array.type) + + +@pytest.mark.parametrize("chunked", [True, False]) +def test_constructor_valid_string_view(chunked): + # requires pyarrow>=18 for casting string_view to string + pa = pytest.importorskip("pyarrow", minversion="18") + + arr = pa.array(["1", "2", "3"], pa.string_view()) + if chunked: + arr = pa.chunked_array(arr) + + arr = ArrowStringArray(arr) + # dictionary type get converted to dense large string array + assert pa.types.is_large_string(arr._pa_array.type) + + +def test_constructor_from_list(): + # GH#27673 + pytest.importorskip("pyarrow") + result = pd.Series(["E"], dtype=StringDtype(storage="pyarrow")) + assert isinstance(result.dtype, StringDtype) + assert result.dtype.storage == "pyarrow" + + +def test_from_sequence_wrong_dtype_raises(using_infer_string): + pytest.importorskip("pyarrow") + with pd.option_context("string_storage", "python"): + ArrowStringArray._from_sequence(["a", None, "c"], dtype="string") + + with pd.option_context("string_storage", "pyarrow"): + ArrowStringArray._from_sequence(["a", None, "c"], dtype="string") + + with pytest.raises(AssertionError, match=None): + ArrowStringArray._from_sequence(["a", None, "c"], dtype="string[python]") + + ArrowStringArray._from_sequence(["a", None, "c"], dtype="string[pyarrow]") + + if not using_infer_string: + with pytest.raises(AssertionError, match=None): + with pd.option_context("string_storage", "python"): + ArrowStringArray._from_sequence(["a", None, "c"], dtype=StringDtype()) + + with pd.option_context("string_storage", "pyarrow"): + ArrowStringArray._from_sequence(["a", None, "c"], dtype=StringDtype()) + + if not using_infer_string: + with pytest.raises(AssertionError, match=None): + ArrowStringArray._from_sequence( + ["a", None, "c"], dtype=StringDtype("python") + ) + + ArrowStringArray._from_sequence(["a", None, "c"], dtype=StringDtype("pyarrow")) + + with pd.option_context("string_storage", "python"): + StringArray._from_sequence(["a", None, "c"], dtype="string") + + with pd.option_context("string_storage", "pyarrow"): + StringArray._from_sequence(["a", None, "c"], dtype="string") + + StringArray._from_sequence(["a", None, "c"], dtype="string[python]") + + with pytest.raises(AssertionError, match=None): + StringArray._from_sequence(["a", None, "c"], dtype="string[pyarrow]") + + if not using_infer_string: + with pd.option_context("string_storage", "python"): + StringArray._from_sequence(["a", None, "c"], dtype=StringDtype()) + + if not using_infer_string: + with pytest.raises(AssertionError, match=None): + with pd.option_context("string_storage", "pyarrow"): + StringArray._from_sequence(["a", None, "c"], dtype=StringDtype()) + + StringArray._from_sequence(["a", None, "c"], dtype=StringDtype("python")) + + with pytest.raises(AssertionError, match=None): + StringArray._from_sequence(["a", None, "c"], dtype=StringDtype("pyarrow")) + + +@td.skip_if_installed("pyarrow") +def test_pyarrow_not_installed_raises(): + msg = re.escape("pyarrow>=10.0.1 is required for PyArrow backed") + + with pytest.raises(ImportError, match=msg): + StringDtype(storage="pyarrow") + + with pytest.raises(ImportError, match=msg): + ArrowStringArray([]) + + with pytest.raises(ImportError, match=msg): + ArrowStringArrayNumpySemantics([]) + + with pytest.raises(ImportError, match=msg): + ArrowStringArray._from_sequence(["a", None, "b"]) + + +@pytest.mark.parametrize("multiple_chunks", [False, True]) +@pytest.mark.parametrize( + "key, value, expected", + [ + (-1, "XX", ["a", "b", "c", "d", "XX"]), + (1, "XX", ["a", "XX", "c", "d", "e"]), + (1, None, ["a", None, "c", "d", "e"]), + (1, pd.NA, ["a", None, "c", "d", "e"]), + ([1, 3], "XX", ["a", "XX", "c", "XX", "e"]), + ([1, 3], ["XX", "YY"], ["a", "XX", "c", "YY", "e"]), + ([1, 3], ["XX", None], ["a", "XX", "c", None, "e"]), + ([1, 3], ["XX", pd.NA], ["a", "XX", "c", None, "e"]), + ([0, -1], ["XX", "YY"], ["XX", "b", "c", "d", "YY"]), + ([-1, 0], ["XX", "YY"], ["YY", "b", "c", "d", "XX"]), + (slice(3, None), "XX", ["a", "b", "c", "XX", "XX"]), + (slice(2, 4), ["XX", "YY"], ["a", "b", "XX", "YY", "e"]), + (slice(3, 1, -1), ["XX", "YY"], ["a", "b", "YY", "XX", "e"]), + (slice(None), "XX", ["XX", "XX", "XX", "XX", "XX"]), + ([False, True, False, True, False], ["XX", "YY"], ["a", "XX", "c", "YY", "e"]), + ], +) +def test_setitem(multiple_chunks, key, value, expected): + pa = pytest.importorskip("pyarrow") + + result = pa.array(list("abcde")) + expected = pa.array(expected) + + if multiple_chunks: + result = pa.chunked_array([result[:3], result[3:]]) + expected = pa.chunked_array([expected[:3], expected[3:]]) + + result = ArrowStringArray(result) + expected = ArrowStringArray(expected) + + result[key] = value + tm.assert_equal(result, expected) + + +def test_setitem_invalid_indexer_raises(): + pa = pytest.importorskip("pyarrow") + + arr = ArrowStringArray(pa.array(list("abcde"))) + + with pytest.raises(IndexError, match=None): + arr[5] = "foo" + + with pytest.raises(IndexError, match=None): + arr[-6] = "foo" + + with pytest.raises(IndexError, match=None): + arr[[0, 5]] = "foo" + + with pytest.raises(IndexError, match=None): + arr[[0, -6]] = "foo" + + with pytest.raises(IndexError, match=None): + arr[[True, True, False]] = "foo" + + with pytest.raises(ValueError, match=None): + arr[[0, 1]] = ["foo", "bar", "baz"] + + +@pytest.mark.parametrize("na_value", [pd.NA, np.nan]) +def test_pickle_roundtrip(na_value): + # GH 42600 + pytest.importorskip("pyarrow") + dtype = StringDtype("pyarrow", na_value=na_value) + expected = pd.Series(range(10), dtype=dtype) + expected_sliced = expected.head(2) + full_pickled = pickle.dumps(expected) + sliced_pickled = pickle.dumps(expected_sliced) + + assert len(full_pickled) > len(sliced_pickled) + + result = pickle.loads(full_pickled) + tm.assert_series_equal(result, expected) + + result_sliced = pickle.loads(sliced_pickled) + tm.assert_series_equal(result_sliced, expected_sliced) + + +def test_string_dtype_error_message(): + # GH#55051 + pytest.importorskip("pyarrow") + msg = "Storage must be 'python' or 'pyarrow'." + with pytest.raises(ValueError, match=msg): + StringDtype("bla") diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/test_array.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/test_array.py new file mode 100644 index 0000000000000000000000000000000000000000..158a963845b066139868de6905f45c83da1ca4bb --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/test_array.py @@ -0,0 +1,519 @@ +import datetime +import decimal +import re + +import numpy as np +import pytest +import pytz + +from pandas._config import using_string_dtype + +import pandas as pd +import pandas._testing as tm +from pandas.api.extensions import register_extension_dtype +from pandas.arrays import ( + BooleanArray, + DatetimeArray, + FloatingArray, + IntegerArray, + IntervalArray, + SparseArray, + TimedeltaArray, +) +from pandas.core.arrays import ( + NumpyExtensionArray, + period_array, +) +from pandas.tests.extension.decimal import ( + DecimalArray, + DecimalDtype, + to_decimal, +) + + +@pytest.mark.parametrize("dtype_unit", ["M8[h]", "M8[m]", "m8[h]", "M8[m]"]) +def test_dt64_array(dtype_unit): + # PR 53817 + dtype_var = np.dtype(dtype_unit) + msg = ( + r"datetime64 and timedelta64 dtype resolutions other than " + r"'s', 'ms', 'us', and 'ns' are deprecated. " + r"In future releases passing unsupported resolutions will " + r"raise an exception." + ) + with tm.assert_produces_warning(FutureWarning, match=re.escape(msg)): + pd.array([], dtype=dtype_var) + + +@pytest.mark.parametrize( + "data, dtype, expected", + [ + # Basic NumPy defaults. + ([], None, FloatingArray._from_sequence([], dtype="Float64")), + ([1, 2], None, IntegerArray._from_sequence([1, 2], dtype="Int64")), + ([1, 2], object, NumpyExtensionArray(np.array([1, 2], dtype=object))), + ( + [1, 2], + np.dtype("float32"), + NumpyExtensionArray(np.array([1.0, 2.0], dtype=np.dtype("float32"))), + ), + ( + np.array([], dtype=object), + None, + NumpyExtensionArray(np.array([], dtype=object)), + ), + ( + np.array([1, 2], dtype="int64"), + None, + IntegerArray._from_sequence([1, 2], dtype="Int64"), + ), + ( + np.array([1.0, 2.0], dtype="float64"), + None, + FloatingArray._from_sequence([1.0, 2.0], dtype="Float64"), + ), + # String alias passes through to NumPy + ([1, 2], "float32", NumpyExtensionArray(np.array([1, 2], dtype="float32"))), + ([1, 2], "int64", NumpyExtensionArray(np.array([1, 2], dtype=np.int64))), + # GH#44715 FloatingArray does not support float16, so fall + # back to NumpyExtensionArray + ( + np.array([1, 2], dtype=np.float16), + None, + NumpyExtensionArray(np.array([1, 2], dtype=np.float16)), + ), + # idempotency with e.g. pd.array(pd.array([1, 2], dtype="int64")) + ( + NumpyExtensionArray(np.array([1, 2], dtype=np.int32)), + None, + NumpyExtensionArray(np.array([1, 2], dtype=np.int32)), + ), + # Period alias + ( + [pd.Period("2000", "D"), pd.Period("2001", "D")], + "Period[D]", + period_array(["2000", "2001"], freq="D"), + ), + # Period dtype + ( + [pd.Period("2000", "D")], + pd.PeriodDtype("D"), + period_array(["2000"], freq="D"), + ), + # Datetime (naive) + ( + [1, 2], + np.dtype("datetime64[ns]"), + DatetimeArray._from_sequence( + np.array([1, 2], dtype="M8[ns]"), dtype="M8[ns]" + ), + ), + ( + [1, 2], + np.dtype("datetime64[s]"), + DatetimeArray._from_sequence( + np.array([1, 2], dtype="M8[s]"), dtype="M8[s]" + ), + ), + ( + np.array([1, 2], dtype="datetime64[ns]"), + None, + DatetimeArray._from_sequence( + np.array([1, 2], dtype="M8[ns]"), dtype="M8[ns]" + ), + ), + ( + pd.DatetimeIndex(["2000", "2001"]), + np.dtype("datetime64[ns]"), + DatetimeArray._from_sequence(["2000", "2001"], dtype="M8[ns]"), + ), + ( + pd.DatetimeIndex(["2000", "2001"]), + None, + DatetimeArray._from_sequence(["2000", "2001"], dtype="M8[ns]"), + ), + ( + ["2000", "2001"], + np.dtype("datetime64[ns]"), + DatetimeArray._from_sequence(["2000", "2001"], dtype="M8[ns]"), + ), + # Datetime (tz-aware) + ( + ["2000", "2001"], + pd.DatetimeTZDtype(tz="CET"), + DatetimeArray._from_sequence( + ["2000", "2001"], dtype=pd.DatetimeTZDtype(tz="CET") + ), + ), + # Timedelta + ( + ["1h", "2h"], + np.dtype("timedelta64[ns]"), + TimedeltaArray._from_sequence(["1h", "2h"], dtype="m8[ns]"), + ), + ( + pd.TimedeltaIndex(["1h", "2h"]), + np.dtype("timedelta64[ns]"), + TimedeltaArray._from_sequence(["1h", "2h"], dtype="m8[ns]"), + ), + ( + np.array([1, 2], dtype="m8[s]"), + np.dtype("timedelta64[s]"), + TimedeltaArray._from_sequence( + np.array([1, 2], dtype="m8[s]"), dtype="m8[s]" + ), + ), + ( + pd.TimedeltaIndex(["1h", "2h"]), + None, + TimedeltaArray._from_sequence(["1h", "2h"], dtype="m8[ns]"), + ), + ( + # preserve non-nano, i.e. don't cast to NumpyExtensionArray + TimedeltaArray._simple_new( + np.arange(5, dtype=np.int64).view("m8[s]"), dtype=np.dtype("m8[s]") + ), + None, + TimedeltaArray._simple_new( + np.arange(5, dtype=np.int64).view("m8[s]"), dtype=np.dtype("m8[s]") + ), + ), + ( + # preserve non-nano, i.e. don't cast to NumpyExtensionArray + TimedeltaArray._simple_new( + np.arange(5, dtype=np.int64).view("m8[s]"), dtype=np.dtype("m8[s]") + ), + np.dtype("m8[s]"), + TimedeltaArray._simple_new( + np.arange(5, dtype=np.int64).view("m8[s]"), dtype=np.dtype("m8[s]") + ), + ), + # Category + (["a", "b"], "category", pd.Categorical(["a", "b"])), + ( + ["a", "b"], + pd.CategoricalDtype(None, ordered=True), + pd.Categorical(["a", "b"], ordered=True), + ), + # Interval + ( + [pd.Interval(1, 2), pd.Interval(3, 4)], + "interval", + IntervalArray.from_tuples([(1, 2), (3, 4)]), + ), + # Sparse + ([0, 1], "Sparse[int64]", SparseArray([0, 1], dtype="int64")), + # IntegerNA + ([1, None], "Int16", pd.array([1, None], dtype="Int16")), + ( + pd.Series([1, 2]), + None, + NumpyExtensionArray(np.array([1, 2], dtype=np.int64)), + ), + # String + ( + ["a", None], + "string", + pd.StringDtype() + .construct_array_type() + ._from_sequence(["a", None], dtype=pd.StringDtype()), + ), + ( + ["a", None], + "str", + pd.StringDtype(na_value=np.nan) + .construct_array_type() + ._from_sequence(["a", None], dtype=pd.StringDtype(na_value=np.nan)) + if using_string_dtype() + else NumpyExtensionArray(np.array(["a", "None"])), + ), + ( + ["a", None], + pd.StringDtype(), + pd.StringDtype() + .construct_array_type() + ._from_sequence(["a", None], dtype=pd.StringDtype()), + ), + ( + ["a", None], + pd.StringDtype(na_value=np.nan), + pd.StringDtype(na_value=np.nan) + .construct_array_type() + ._from_sequence(["a", None], dtype=pd.StringDtype(na_value=np.nan)), + ), + ( + # numpy array with string dtype + np.array(["a", "b"], dtype=str), + pd.StringDtype(), + pd.StringDtype() + .construct_array_type() + ._from_sequence(["a", "b"], dtype=pd.StringDtype()), + ), + ( + # numpy array with string dtype + np.array(["a", "b"], dtype=str), + pd.StringDtype(na_value=np.nan), + pd.StringDtype(na_value=np.nan) + .construct_array_type() + ._from_sequence(["a", "b"], dtype=pd.StringDtype(na_value=np.nan)), + ), + # Boolean + ( + [True, None], + "boolean", + BooleanArray._from_sequence([True, None], dtype="boolean"), + ), + ( + [True, None], + pd.BooleanDtype(), + BooleanArray._from_sequence([True, None], dtype="boolean"), + ), + # Index + (pd.Index([1, 2]), None, NumpyExtensionArray(np.array([1, 2], dtype=np.int64))), + # Series[EA] returns the EA + ( + pd.Series(pd.Categorical(["a", "b"], categories=["a", "b", "c"])), + None, + pd.Categorical(["a", "b"], categories=["a", "b", "c"]), + ), + # "3rd party" EAs work + ([decimal.Decimal(0), decimal.Decimal(1)], "decimal", to_decimal([0, 1])), + # pass an ExtensionArray, but a different dtype + ( + period_array(["2000", "2001"], freq="D"), + "category", + pd.Categorical([pd.Period("2000", "D"), pd.Period("2001", "D")]), + ), + ], +) +def test_array(data, dtype, expected): + result = pd.array(data, dtype=dtype) + tm.assert_equal(result, expected) + + +def test_array_copy(): + a = np.array([1, 2]) + # default is to copy + b = pd.array(a, dtype=a.dtype) + assert not tm.shares_memory(a, b) + + # copy=True + b = pd.array(a, dtype=a.dtype, copy=True) + assert not tm.shares_memory(a, b) + + # copy=False + b = pd.array(a, dtype=a.dtype, copy=False) + assert tm.shares_memory(a, b) + + +cet = pytz.timezone("CET") + + +@pytest.mark.parametrize( + "data, expected", + [ + # period + ( + [pd.Period("2000", "D"), pd.Period("2001", "D")], + period_array(["2000", "2001"], freq="D"), + ), + # interval + ([pd.Interval(0, 1), pd.Interval(1, 2)], IntervalArray.from_breaks([0, 1, 2])), + # datetime + ( + [pd.Timestamp("2000"), pd.Timestamp("2001")], + DatetimeArray._from_sequence(["2000", "2001"], dtype="M8[ns]"), + ), + ( + [datetime.datetime(2000, 1, 1), datetime.datetime(2001, 1, 1)], + DatetimeArray._from_sequence(["2000", "2001"], dtype="M8[ns]"), + ), + ( + np.array([1, 2], dtype="M8[ns]"), + DatetimeArray._from_sequence(np.array([1, 2], dtype="M8[ns]")), + ), + ( + np.array([1, 2], dtype="M8[us]"), + DatetimeArray._simple_new( + np.array([1, 2], dtype="M8[us]"), dtype=np.dtype("M8[us]") + ), + ), + # datetimetz + ( + [pd.Timestamp("2000", tz="CET"), pd.Timestamp("2001", tz="CET")], + DatetimeArray._from_sequence( + ["2000", "2001"], dtype=pd.DatetimeTZDtype(tz="CET", unit="ns") + ), + ), + ( + [ + datetime.datetime(2000, 1, 1, tzinfo=cet), + datetime.datetime(2001, 1, 1, tzinfo=cet), + ], + DatetimeArray._from_sequence( + ["2000", "2001"], dtype=pd.DatetimeTZDtype(tz=cet, unit="ns") + ), + ), + # timedelta + ( + [pd.Timedelta("1h"), pd.Timedelta("2h")], + TimedeltaArray._from_sequence(["1h", "2h"], dtype="m8[ns]"), + ), + ( + np.array([1, 2], dtype="m8[ns]"), + TimedeltaArray._from_sequence(np.array([1, 2], dtype="m8[ns]")), + ), + ( + np.array([1, 2], dtype="m8[us]"), + TimedeltaArray._from_sequence(np.array([1, 2], dtype="m8[us]")), + ), + # integer + ([1, 2], IntegerArray._from_sequence([1, 2], dtype="Int64")), + ([1, None], IntegerArray._from_sequence([1, None], dtype="Int64")), + ([1, pd.NA], IntegerArray._from_sequence([1, pd.NA], dtype="Int64")), + ([1, np.nan], IntegerArray._from_sequence([1, np.nan], dtype="Int64")), + # float + ([0.1, 0.2], FloatingArray._from_sequence([0.1, 0.2], dtype="Float64")), + ([0.1, None], FloatingArray._from_sequence([0.1, pd.NA], dtype="Float64")), + ([0.1, np.nan], FloatingArray._from_sequence([0.1, pd.NA], dtype="Float64")), + ([0.1, pd.NA], FloatingArray._from_sequence([0.1, pd.NA], dtype="Float64")), + # integer-like float + ([1.0, 2.0], FloatingArray._from_sequence([1.0, 2.0], dtype="Float64")), + ([1.0, None], FloatingArray._from_sequence([1.0, pd.NA], dtype="Float64")), + ([1.0, np.nan], FloatingArray._from_sequence([1.0, pd.NA], dtype="Float64")), + ([1.0, pd.NA], FloatingArray._from_sequence([1.0, pd.NA], dtype="Float64")), + # mixed-integer-float + ([1, 2.0], FloatingArray._from_sequence([1.0, 2.0], dtype="Float64")), + ( + [1, np.nan, 2.0], + FloatingArray._from_sequence([1.0, None, 2.0], dtype="Float64"), + ), + # string + ( + ["a", "b"], + pd.StringDtype() + .construct_array_type() + ._from_sequence(["a", "b"], dtype=pd.StringDtype()), + ), + ( + ["a", None], + pd.StringDtype() + .construct_array_type() + ._from_sequence(["a", None], dtype=pd.StringDtype()), + ), + ( + # numpy array with string dtype + np.array(["a", "b"], dtype=str), + pd.StringDtype() + .construct_array_type() + ._from_sequence(["a", "b"], dtype=pd.StringDtype()), + ), + # Boolean + ([True, False], BooleanArray._from_sequence([True, False], dtype="boolean")), + ([True, None], BooleanArray._from_sequence([True, None], dtype="boolean")), + ], +) +def test_array_inference(data, expected): + result = pd.array(data) + tm.assert_equal(result, expected) + + +@pytest.mark.parametrize( + "data", + [ + # mix of frequencies + [pd.Period("2000", "D"), pd.Period("2001", "Y")], + # mix of closed + [pd.Interval(0, 1, closed="left"), pd.Interval(1, 2, closed="right")], + # Mix of timezones + [pd.Timestamp("2000", tz="CET"), pd.Timestamp("2000", tz="UTC")], + # Mix of tz-aware and tz-naive + [pd.Timestamp("2000", tz="CET"), pd.Timestamp("2000")], + np.array([pd.Timestamp("2000"), pd.Timestamp("2000", tz="CET")]), + ], +) +def test_array_inference_fails(data): + result = pd.array(data) + expected = NumpyExtensionArray(np.array(data, dtype=object)) + tm.assert_extension_array_equal(result, expected) + + +@pytest.mark.parametrize("data", [np.array(0)]) +def test_nd_raises(data): + with pytest.raises(ValueError, match="NumpyExtensionArray must be 1-dimensional"): + pd.array(data, dtype="int64") + + +def test_scalar_raises(): + with pytest.raises(ValueError, match="Cannot pass scalar '1'"): + pd.array(1) + + +def test_dataframe_raises(): + # GH#51167 don't accidentally cast to StringArray by doing inference on columns + df = pd.DataFrame([[1, 2], [3, 4]], columns=["A", "B"]) + msg = "Cannot pass DataFrame to 'pandas.array'" + with pytest.raises(TypeError, match=msg): + pd.array(df) + + +def test_bounds_check(): + # GH21796 + with pytest.raises( + TypeError, match=r"cannot safely cast non-equivalent int(32|64) to uint16" + ): + pd.array([-1, 2, 3], dtype="UInt16") + + +# --------------------------------------------------------------------------- +# A couple dummy classes to ensure that Series and Indexes are unboxed before +# getting to the EA classes. + + +@register_extension_dtype +class DecimalDtype2(DecimalDtype): + name = "decimal2" + + @classmethod + def construct_array_type(cls): + """ + Return the array type associated with this dtype. + + Returns + ------- + type + """ + return DecimalArray2 + + +class DecimalArray2(DecimalArray): + @classmethod + def _from_sequence(cls, scalars, *, dtype=None, copy=False): + if isinstance(scalars, (pd.Series, pd.Index)): + raise TypeError("scalars should not be of type pd.Series or pd.Index") + + return super()._from_sequence(scalars, dtype=dtype, copy=copy) + + +def test_array_unboxes(index_or_series): + box = index_or_series + + data = box([decimal.Decimal("1"), decimal.Decimal("2")]) + dtype = DecimalDtype2() + # make sure it works + with pytest.raises( + TypeError, match="scalars should not be of type pd.Series or pd.Index" + ): + DecimalArray2._from_sequence(data, dtype=dtype) + + result = pd.array(data, dtype="decimal2") + expected = DecimalArray2._from_sequence(data.values, dtype=dtype) + tm.assert_equal(result, expected) + + +def test_array_to_numpy_na(): + # GH#40638 + arr = pd.array([pd.NA, 1], dtype="string[python]") + result = arr.to_numpy(na_value=True, dtype=bool) + expected = np.array([True, True]) + tm.assert_numpy_array_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/test_datetimelike.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/test_datetimelike.py new file mode 100644 index 0000000000000000000000000000000000000000..0397913b69b26833c394fb25c427130cea098674 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/test_datetimelike.py @@ -0,0 +1,1360 @@ +from __future__ import annotations + +import re +import warnings + +import numpy as np +import pytest + +from pandas._libs import ( + NaT, + OutOfBoundsDatetime, + Timestamp, +) +from pandas._libs.tslibs.dtypes import freq_to_period_freqstr +from pandas.compat.numpy import np_version_gt2 + +import pandas as pd +from pandas import ( + DatetimeIndex, + Period, + PeriodIndex, + TimedeltaIndex, +) +import pandas._testing as tm +from pandas.core.arrays import ( + DatetimeArray, + NumpyExtensionArray, + PeriodArray, + TimedeltaArray, +) + + +# TODO: more freq variants +@pytest.fixture(params=["D", "B", "W", "ME", "QE", "YE"]) +def freqstr(request): + """Fixture returning parametrized frequency in string format.""" + return request.param + + +@pytest.fixture +def period_index(freqstr): + """ + A fixture to provide PeriodIndex objects with different frequencies. + + Most PeriodArray behavior is already tested in PeriodIndex tests, + so here we just test that the PeriodArray behavior matches + the PeriodIndex behavior. + """ + # TODO: non-monotone indexes; NaTs, different start dates + with warnings.catch_warnings(): + # suppress deprecation of Period[B] + warnings.filterwarnings( + "ignore", message="Period with BDay freq", category=FutureWarning + ) + freqstr = freq_to_period_freqstr(1, freqstr) + pi = pd.period_range(start=Timestamp("2000-01-01"), periods=100, freq=freqstr) + return pi + + +@pytest.fixture +def datetime_index(freqstr): + """ + A fixture to provide DatetimeIndex objects with different frequencies. + + Most DatetimeArray behavior is already tested in DatetimeIndex tests, + so here we just test that the DatetimeArray behavior matches + the DatetimeIndex behavior. + """ + # TODO: non-monotone indexes; NaTs, different start dates, timezones + dti = pd.date_range(start=Timestamp("2000-01-01"), periods=100, freq=freqstr) + return dti + + +@pytest.fixture +def timedelta_index(): + """ + A fixture to provide TimedeltaIndex objects with different frequencies. + Most TimedeltaArray behavior is already tested in TimedeltaIndex tests, + so here we just test that the TimedeltaArray behavior matches + the TimedeltaIndex behavior. + """ + # TODO: flesh this out + return TimedeltaIndex(["1 Day", "3 Hours", "NaT"]) + + +class SharedTests: + index_cls: type[DatetimeIndex | PeriodIndex | TimedeltaIndex] + + @pytest.fixture + def arr1d(self): + """Fixture returning DatetimeArray with daily frequency.""" + data = np.arange(10, dtype="i8") * 24 * 3600 * 10**9 + if self.array_cls is PeriodArray: + arr = self.array_cls(data, freq="D") + else: + arr = self.index_cls(data, freq="D")._data + return arr + + def test_compare_len1_raises(self, arr1d): + # make sure we raise when comparing with different lengths, specific + # to the case where one has length-1, which numpy would broadcast + arr = arr1d + idx = self.index_cls(arr) + + with pytest.raises(ValueError, match="Lengths must match"): + arr == arr[:1] + + # test the index classes while we're at it, GH#23078 + with pytest.raises(ValueError, match="Lengths must match"): + idx <= idx[[0]] + + @pytest.mark.parametrize( + "result", + [ + pd.date_range("2020", periods=3), + pd.date_range("2020", periods=3, tz="UTC"), + pd.timedelta_range("0 days", periods=3), + pd.period_range("2020Q1", periods=3, freq="Q"), + ], + ) + def test_compare_with_Categorical(self, result): + expected = pd.Categorical(result) + assert all(result == expected) + assert not any(result != expected) + + @pytest.mark.parametrize("reverse", [True, False]) + @pytest.mark.parametrize("as_index", [True, False]) + def test_compare_categorical_dtype(self, arr1d, as_index, reverse, ordered): + other = pd.Categorical(arr1d, ordered=ordered) + if as_index: + other = pd.CategoricalIndex(other) + + left, right = arr1d, other + if reverse: + left, right = right, left + + ones = np.ones(arr1d.shape, dtype=bool) + zeros = ~ones + + result = left == right + tm.assert_numpy_array_equal(result, ones) + + result = left != right + tm.assert_numpy_array_equal(result, zeros) + + if not reverse and not as_index: + # Otherwise Categorical raises TypeError bc it is not ordered + # TODO: we should probably get the same behavior regardless? + result = left < right + tm.assert_numpy_array_equal(result, zeros) + + result = left <= right + tm.assert_numpy_array_equal(result, ones) + + result = left > right + tm.assert_numpy_array_equal(result, zeros) + + result = left >= right + tm.assert_numpy_array_equal(result, ones) + + def test_take(self): + data = np.arange(100, dtype="i8") * 24 * 3600 * 10**9 + np.random.default_rng(2).shuffle(data) + + if self.array_cls is PeriodArray: + arr = PeriodArray(data, dtype="period[D]") + else: + arr = self.index_cls(data)._data + idx = self.index_cls._simple_new(arr) + + takers = [1, 4, 94] + result = arr.take(takers) + expected = idx.take(takers) + + tm.assert_index_equal(self.index_cls(result), expected) + + takers = np.array([1, 4, 94]) + result = arr.take(takers) + expected = idx.take(takers) + + tm.assert_index_equal(self.index_cls(result), expected) + + @pytest.mark.parametrize("fill_value", [2, 2.0, Timestamp(2021, 1, 1, 12).time]) + def test_take_fill_raises(self, fill_value, arr1d): + msg = f"value should be a '{arr1d._scalar_type.__name__}' or 'NaT'. Got" + with pytest.raises(TypeError, match=msg): + arr1d.take([0, 1], allow_fill=True, fill_value=fill_value) + + def test_take_fill(self, arr1d): + arr = arr1d + + result = arr.take([-1, 1], allow_fill=True, fill_value=None) + assert result[0] is NaT + + result = arr.take([-1, 1], allow_fill=True, fill_value=np.nan) + assert result[0] is NaT + + result = arr.take([-1, 1], allow_fill=True, fill_value=NaT) + assert result[0] is NaT + + @pytest.mark.filterwarnings( + "ignore:Period with BDay freq is deprecated:FutureWarning" + ) + def test_take_fill_str(self, arr1d): + # Cast str fill_value matching other fill_value-taking methods + result = arr1d.take([-1, 1], allow_fill=True, fill_value=str(arr1d[-1])) + expected = arr1d[[-1, 1]] + tm.assert_equal(result, expected) + + msg = f"value should be a '{arr1d._scalar_type.__name__}' or 'NaT'. Got" + with pytest.raises(TypeError, match=msg): + arr1d.take([-1, 1], allow_fill=True, fill_value="foo") + + def test_concat_same_type(self, arr1d): + arr = arr1d + idx = self.index_cls(arr) + idx = idx.insert(0, NaT) + arr = arr1d + + result = arr._concat_same_type([arr[:-1], arr[1:], arr]) + arr2 = arr.astype(object) + expected = self.index_cls(np.concatenate([arr2[:-1], arr2[1:], arr2])) + + tm.assert_index_equal(self.index_cls(result), expected) + + def test_unbox_scalar(self, arr1d): + result = arr1d._unbox_scalar(arr1d[0]) + expected = arr1d._ndarray.dtype.type + assert isinstance(result, expected) + + result = arr1d._unbox_scalar(NaT) + assert isinstance(result, expected) + + msg = f"'value' should be a {self.scalar_type.__name__}." + with pytest.raises(ValueError, match=msg): + arr1d._unbox_scalar("foo") + + def test_check_compatible_with(self, arr1d): + arr1d._check_compatible_with(arr1d[0]) + arr1d._check_compatible_with(arr1d[:1]) + arr1d._check_compatible_with(NaT) + + def test_scalar_from_string(self, arr1d): + result = arr1d._scalar_from_string(str(arr1d[0])) + assert result == arr1d[0] + + def test_reduce_invalid(self, arr1d): + msg = "does not support reduction 'not a method'" + with pytest.raises(TypeError, match=msg): + arr1d._reduce("not a method") + + @pytest.mark.parametrize("method", ["pad", "backfill"]) + def test_fillna_method_doesnt_change_orig(self, method): + data = np.arange(10, dtype="i8") * 24 * 3600 * 10**9 + if self.array_cls is PeriodArray: + arr = self.array_cls(data, dtype="period[D]") + else: + arr = self.array_cls._from_sequence(data) + arr[4] = NaT + + fill_value = arr[3] if method == "pad" else arr[5] + + result = arr._pad_or_backfill(method=method) + assert result[4] == fill_value + + # check that the original was not changed + assert arr[4] is NaT + + def test_searchsorted(self): + data = np.arange(10, dtype="i8") * 24 * 3600 * 10**9 + if self.array_cls is PeriodArray: + arr = self.array_cls(data, dtype="period[D]") + else: + arr = self.array_cls._from_sequence(data) + + # scalar + result = arr.searchsorted(arr[1]) + assert result == 1 + + result = arr.searchsorted(arr[2], side="right") + assert result == 3 + + # own-type + result = arr.searchsorted(arr[1:3]) + expected = np.array([1, 2], dtype=np.intp) + tm.assert_numpy_array_equal(result, expected) + + result = arr.searchsorted(arr[1:3], side="right") + expected = np.array([2, 3], dtype=np.intp) + tm.assert_numpy_array_equal(result, expected) + + # GH#29884 match numpy convention on whether NaT goes + # at the end or the beginning + result = arr.searchsorted(NaT) + assert result == 10 + + @pytest.mark.parametrize("box", [None, "index", "series"]) + def test_searchsorted_castable_strings(self, arr1d, box, string_storage): + arr = arr1d + if box is None: + pass + elif box == "index": + # Test the equivalent Index.searchsorted method while we're here + arr = self.index_cls(arr) + else: + # Test the equivalent Series.searchsorted method while we're here + arr = pd.Series(arr) + + # scalar + result = arr.searchsorted(str(arr[1])) + assert result == 1 + + result = arr.searchsorted(str(arr[2]), side="right") + assert result == 3 + + result = arr.searchsorted([str(x) for x in arr[1:3]]) + expected = np.array([1, 2], dtype=np.intp) + tm.assert_numpy_array_equal(result, expected) + + with pytest.raises( + TypeError, + match=re.escape( + f"value should be a '{arr1d._scalar_type.__name__}', 'NaT', " + "or array of those. Got 'str' instead." + ), + ): + arr.searchsorted("foo") + + with pd.option_context("string_storage", string_storage): + with pytest.raises( + TypeError, + match=re.escape( + f"value should be a '{arr1d._scalar_type.__name__}', 'NaT', " + "or array of those. Got string array instead." + ), + ): + arr.searchsorted([str(arr[1]), "baz"]) + + def test_getitem_near_implementation_bounds(self): + # We only check tz-naive for DTA bc the bounds are slightly different + # for other tzs + i8vals = np.asarray([NaT._value + n for n in range(1, 5)], dtype="i8") + if self.array_cls is PeriodArray: + arr = self.array_cls(i8vals, dtype="period[ns]") + else: + arr = self.index_cls(i8vals, freq="ns")._data + arr[0] # should not raise OutOfBoundsDatetime + + index = pd.Index(arr) + index[0] # should not raise OutOfBoundsDatetime + + ser = pd.Series(arr) + ser[0] # should not raise OutOfBoundsDatetime + + def test_getitem_2d(self, arr1d): + # 2d slicing on a 1D array + expected = type(arr1d)._simple_new( + arr1d._ndarray[:, np.newaxis], dtype=arr1d.dtype + ) + result = arr1d[:, np.newaxis] + tm.assert_equal(result, expected) + + # Lookup on a 2D array + arr2d = expected + expected = type(arr2d)._simple_new(arr2d._ndarray[:3, 0], dtype=arr2d.dtype) + result = arr2d[:3, 0] + tm.assert_equal(result, expected) + + # Scalar lookup + result = arr2d[-1, 0] + expected = arr1d[-1] + assert result == expected + + def test_iter_2d(self, arr1d): + data2d = arr1d._ndarray[:3, np.newaxis] + arr2d = type(arr1d)._simple_new(data2d, dtype=arr1d.dtype) + result = list(arr2d) + assert len(result) == 3 + for x in result: + assert isinstance(x, type(arr1d)) + assert x.ndim == 1 + assert x.dtype == arr1d.dtype + + def test_repr_2d(self, arr1d): + data2d = arr1d._ndarray[:3, np.newaxis] + arr2d = type(arr1d)._simple_new(data2d, dtype=arr1d.dtype) + + result = repr(arr2d) + + if isinstance(arr2d, TimedeltaArray): + expected = ( + f"<{type(arr2d).__name__}>\n" + "[\n" + f"['{arr1d[0]._repr_base()}'],\n" + f"['{arr1d[1]._repr_base()}'],\n" + f"['{arr1d[2]._repr_base()}']\n" + "]\n" + f"Shape: (3, 1), dtype: {arr1d.dtype}" + ) + else: + expected = ( + f"<{type(arr2d).__name__}>\n" + "[\n" + f"['{arr1d[0]}'],\n" + f"['{arr1d[1]}'],\n" + f"['{arr1d[2]}']\n" + "]\n" + f"Shape: (3, 1), dtype: {arr1d.dtype}" + ) + + assert result == expected + + def test_setitem(self): + data = np.arange(10, dtype="i8") * 24 * 3600 * 10**9 + if self.array_cls is PeriodArray: + arr = self.array_cls(data, dtype="period[D]") + else: + arr = self.index_cls(data, freq="D")._data + + arr[0] = arr[1] + expected = np.arange(10, dtype="i8") * 24 * 3600 * 10**9 + expected[0] = expected[1] + + tm.assert_numpy_array_equal(arr.asi8, expected) + + arr[:2] = arr[-2:] + expected[:2] = expected[-2:] + tm.assert_numpy_array_equal(arr.asi8, expected) + + @pytest.mark.parametrize( + "box", + [ + pd.Index, + pd.Series, + np.array, + list, + NumpyExtensionArray, + ], + ) + def test_setitem_object_dtype(self, box, arr1d): + expected = arr1d.copy()[::-1] + if expected.dtype.kind in ["m", "M"]: + expected = expected._with_freq(None) + + vals = expected + if box is list: + vals = list(vals) + elif box is np.array: + # if we do np.array(x).astype(object) then dt64 and td64 cast to ints + vals = np.array(vals.astype(object)) + elif box is NumpyExtensionArray: + vals = box(np.asarray(vals, dtype=object)) + else: + vals = box(vals).astype(object) + + arr1d[:] = vals + + tm.assert_equal(arr1d, expected) + + def test_setitem_strs(self, arr1d): + # Check that we parse strs in both scalar and listlike + + # Setting list-like of strs + expected = arr1d.copy() + expected[[0, 1]] = arr1d[-2:] + + result = arr1d.copy() + result[:2] = [str(x) for x in arr1d[-2:]] + tm.assert_equal(result, expected) + + # Same thing but now for just a scalar str + expected = arr1d.copy() + expected[0] = arr1d[-1] + + result = arr1d.copy() + result[0] = str(arr1d[-1]) + tm.assert_equal(result, expected) + + @pytest.mark.parametrize("as_index", [True, False]) + def test_setitem_categorical(self, arr1d, as_index): + expected = arr1d.copy()[::-1] + if not isinstance(expected, PeriodArray): + expected = expected._with_freq(None) + + cat = pd.Categorical(arr1d) + if as_index: + cat = pd.CategoricalIndex(cat) + + arr1d[:] = cat[::-1] + + tm.assert_equal(arr1d, expected) + + def test_setitem_raises(self, arr1d): + arr = arr1d[:10] + val = arr[0] + + with pytest.raises(IndexError, match="index 12 is out of bounds"): + arr[12] = val + + with pytest.raises(TypeError, match="value should be a.* 'object'"): + arr[0] = object() + + msg = "cannot set using a list-like indexer with a different length" + with pytest.raises(ValueError, match=msg): + # GH#36339 + arr[[]] = [arr[1]] + + msg = "cannot set using a slice indexer with a different length than" + with pytest.raises(ValueError, match=msg): + # GH#36339 + arr[1:1] = arr[:3] + + @pytest.mark.parametrize("box", [list, np.array, pd.Index, pd.Series]) + def test_setitem_numeric_raises(self, arr1d, box): + # We dont case e.g. int64 to our own dtype for setitem + + msg = ( + f"value should be a '{arr1d._scalar_type.__name__}', " + "'NaT', or array of those. Got" + ) + with pytest.raises(TypeError, match=msg): + arr1d[:2] = box([0, 1]) + + with pytest.raises(TypeError, match=msg): + arr1d[:2] = box([0.0, 1.0]) + + def test_inplace_arithmetic(self): + # GH#24115 check that iadd and isub are actually in-place + data = np.arange(10, dtype="i8") * 24 * 3600 * 10**9 + if self.array_cls is PeriodArray: + arr = self.array_cls(data, dtype="period[D]") + else: + arr = self.index_cls(data, freq="D")._data + + expected = arr + pd.Timedelta(days=1) + arr += pd.Timedelta(days=1) + tm.assert_equal(arr, expected) + + expected = arr - pd.Timedelta(days=1) + arr -= pd.Timedelta(days=1) + tm.assert_equal(arr, expected) + + def test_shift_fill_int_deprecated(self, arr1d): + # GH#31971, enforced in 2.0 + with pytest.raises(TypeError, match="value should be a"): + arr1d.shift(1, fill_value=1) + + def test_median(self, arr1d): + arr = arr1d + if len(arr) % 2 == 0: + # make it easier to define `expected` + arr = arr[:-1] + + expected = arr[len(arr) // 2] + + result = arr.median() + assert type(result) is type(expected) + assert result == expected + + arr[len(arr) // 2] = NaT + if not isinstance(expected, Period): + expected = arr[len(arr) // 2 - 1 : len(arr) // 2 + 2].mean() + + assert arr.median(skipna=False) is NaT + + result = arr.median() + assert type(result) is type(expected) + assert result == expected + + assert arr[:0].median() is NaT + assert arr[:0].median(skipna=False) is NaT + + # 2d Case + arr2 = arr.reshape(-1, 1) + + result = arr2.median(axis=None) + assert type(result) is type(expected) + assert result == expected + + assert arr2.median(axis=None, skipna=False) is NaT + + result = arr2.median(axis=0) + expected2 = type(arr)._from_sequence([expected], dtype=arr.dtype) + tm.assert_equal(result, expected2) + + result = arr2.median(axis=0, skipna=False) + expected2 = type(arr)._from_sequence([NaT], dtype=arr.dtype) + tm.assert_equal(result, expected2) + + result = arr2.median(axis=1) + tm.assert_equal(result, arr) + + result = arr2.median(axis=1, skipna=False) + tm.assert_equal(result, arr) + + def test_from_integer_array(self): + arr = np.array([1, 2, 3], dtype=np.int64) + data = pd.array(arr, dtype="Int64") + if self.array_cls is PeriodArray: + expected = self.array_cls(arr, dtype=self.example_dtype) + result = self.array_cls(data, dtype=self.example_dtype) + else: + expected = self.array_cls._from_sequence(arr, dtype=self.example_dtype) + result = self.array_cls._from_sequence(data, dtype=self.example_dtype) + + tm.assert_extension_array_equal(result, expected) + + +class TestDatetimeArray(SharedTests): + index_cls = DatetimeIndex + array_cls = DatetimeArray + scalar_type = Timestamp + example_dtype = "M8[ns]" + + @pytest.fixture + def arr1d(self, tz_naive_fixture, freqstr): + """ + Fixture returning DatetimeArray with parametrized frequency and + timezones + """ + tz = tz_naive_fixture + dti = pd.date_range("2016-01-01 01:01:00", periods=5, freq=freqstr, tz=tz) + dta = dti._data + return dta + + def test_round(self, arr1d): + # GH#24064 + dti = self.index_cls(arr1d) + + result = dti.round(freq="2min") + expected = dti - pd.Timedelta(minutes=1) + expected = expected._with_freq(None) + tm.assert_index_equal(result, expected) + + dta = dti._data + result = dta.round(freq="2min") + expected = expected._data._with_freq(None) + tm.assert_datetime_array_equal(result, expected) + + def test_array_interface(self, datetime_index): + arr = datetime_index._data + copy_false = None if np_version_gt2 else False + + # default asarray gives the same underlying data (for tz naive) + result = np.asarray(arr) + expected = arr._ndarray + assert result is expected + tm.assert_numpy_array_equal(result, expected) + result = np.array(arr, copy=copy_false) + assert result is expected + tm.assert_numpy_array_equal(result, expected) + + # specifying M8[ns] gives the same result as default + result = np.asarray(arr, dtype="datetime64[ns]") + expected = arr._ndarray + assert result is expected + tm.assert_numpy_array_equal(result, expected) + result = np.array(arr, dtype="datetime64[ns]", copy=copy_false) + assert result is expected + tm.assert_numpy_array_equal(result, expected) + result = np.array(arr, dtype="datetime64[ns]") + if not np_version_gt2: + # TODO: GH 57739 + assert result is not expected + tm.assert_numpy_array_equal(result, expected) + + # to object dtype + result = np.asarray(arr, dtype=object) + expected = np.array(list(arr), dtype=object) + tm.assert_numpy_array_equal(result, expected) + + # to other dtype always copies + result = np.asarray(arr, dtype="int64") + assert result is not arr.asi8 + assert not np.may_share_memory(arr, result) + expected = arr.asi8.copy() + tm.assert_numpy_array_equal(result, expected) + + # other dtypes handled by numpy + for dtype in ["float64", str]: + result = np.asarray(arr, dtype=dtype) + expected = np.asarray(arr).astype(dtype) + tm.assert_numpy_array_equal(result, expected) + + def test_array_object_dtype(self, arr1d): + # GH#23524 + arr = arr1d + dti = self.index_cls(arr1d) + + expected = np.array(list(dti)) + + result = np.array(arr, dtype=object) + tm.assert_numpy_array_equal(result, expected) + + # also test the DatetimeIndex method while we're at it + result = np.array(dti, dtype=object) + tm.assert_numpy_array_equal(result, expected) + + def test_array_tz(self, arr1d): + # GH#23524 + arr = arr1d + dti = self.index_cls(arr1d) + copy_false = None if np_version_gt2 else False + + expected = dti.asi8.view("M8[ns]") + result = np.array(arr, dtype="M8[ns]") + tm.assert_numpy_array_equal(result, expected) + + result = np.array(arr, dtype="datetime64[ns]") + tm.assert_numpy_array_equal(result, expected) + + # check that we are not making copies when setting copy=copy_false + result = np.array(arr, dtype="M8[ns]", copy=copy_false) + assert result.base is expected.base + assert result.base is not None + result = np.array(arr, dtype="datetime64[ns]", copy=copy_false) + assert result.base is expected.base + assert result.base is not None + + def test_array_i8_dtype(self, arr1d): + arr = arr1d + dti = self.index_cls(arr1d) + copy_false = None if np_version_gt2 else False + + expected = dti.asi8 + result = np.array(arr, dtype="i8") + tm.assert_numpy_array_equal(result, expected) + + result = np.array(arr, dtype=np.int64) + tm.assert_numpy_array_equal(result, expected) + + # check that we are still making copies when setting copy=copy_false + result = np.array(arr, dtype="i8", copy=copy_false) + assert result.base is not expected.base + assert result.base is None + + def test_from_array_keeps_base(self): + # Ensure that DatetimeArray._ndarray.base isn't lost. + arr = np.array(["2000-01-01", "2000-01-02"], dtype="M8[ns]") + dta = DatetimeArray._from_sequence(arr) + + assert dta._ndarray is arr + dta = DatetimeArray._from_sequence(arr[:0]) + assert dta._ndarray.base is arr + + def test_from_dti(self, arr1d): + arr = arr1d + dti = self.index_cls(arr1d) + assert list(dti) == list(arr) + + # Check that Index.__new__ knows what to do with DatetimeArray + dti2 = pd.Index(arr) + assert isinstance(dti2, DatetimeIndex) + assert list(dti2) == list(arr) + + def test_astype_object(self, arr1d): + arr = arr1d + dti = self.index_cls(arr1d) + + asobj = arr.astype("O") + assert isinstance(asobj, np.ndarray) + assert asobj.dtype == "O" + assert list(asobj) == list(dti) + + @pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") + def test_to_period(self, datetime_index, freqstr): + dti = datetime_index + arr = dti._data + + freqstr = freq_to_period_freqstr(1, freqstr) + expected = dti.to_period(freq=freqstr) + result = arr.to_period(freq=freqstr) + assert isinstance(result, PeriodArray) + + tm.assert_equal(result, expected._data) + + def test_to_period_2d(self, arr1d): + arr2d = arr1d.reshape(1, -1) + + warn = None if arr1d.tz is None else UserWarning + with tm.assert_produces_warning(warn): + result = arr2d.to_period("D") + expected = arr1d.to_period("D").reshape(1, -1) + tm.assert_period_array_equal(result, expected) + + @pytest.mark.parametrize("propname", DatetimeArray._bool_ops) + def test_bool_properties(self, arr1d, propname): + # in this case _bool_ops is just `is_leap_year` + dti = self.index_cls(arr1d) + arr = arr1d + assert dti.freq == arr.freq + + result = getattr(arr, propname) + expected = np.array(getattr(dti, propname), dtype=result.dtype) + + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize("propname", DatetimeArray._field_ops) + def test_int_properties(self, arr1d, propname): + dti = self.index_cls(arr1d) + arr = arr1d + + result = getattr(arr, propname) + expected = np.array(getattr(dti, propname), dtype=result.dtype) + + tm.assert_numpy_array_equal(result, expected) + + def test_take_fill_valid(self, arr1d, fixed_now_ts): + arr = arr1d + dti = self.index_cls(arr1d) + + now = fixed_now_ts.tz_localize(dti.tz) + result = arr.take([-1, 1], allow_fill=True, fill_value=now) + assert result[0] == now + + msg = f"value should be a '{arr1d._scalar_type.__name__}' or 'NaT'. Got" + with pytest.raises(TypeError, match=msg): + # fill_value Timedelta invalid + arr.take([-1, 1], allow_fill=True, fill_value=now - now) + + with pytest.raises(TypeError, match=msg): + # fill_value Period invalid + arr.take([-1, 1], allow_fill=True, fill_value=Period("2014Q1")) + + tz = None if dti.tz is not None else "US/Eastern" + now = fixed_now_ts.tz_localize(tz) + msg = "Cannot compare tz-naive and tz-aware datetime-like objects" + with pytest.raises(TypeError, match=msg): + # Timestamp with mismatched tz-awareness + arr.take([-1, 1], allow_fill=True, fill_value=now) + + value = NaT._value + msg = f"value should be a '{arr1d._scalar_type.__name__}' or 'NaT'. Got" + with pytest.raises(TypeError, match=msg): + # require NaT, not iNaT, as it could be confused with an integer + arr.take([-1, 1], allow_fill=True, fill_value=value) + + value = np.timedelta64("NaT", "ns") + with pytest.raises(TypeError, match=msg): + # require appropriate-dtype if we have a NA value + arr.take([-1, 1], allow_fill=True, fill_value=value) + + if arr.tz is not None: + # GH#37356 + # Assuming here that arr1d fixture does not include Australia/Melbourne + value = fixed_now_ts.tz_localize("Australia/Melbourne") + result = arr.take([-1, 1], allow_fill=True, fill_value=value) + + expected = arr.take( + [-1, 1], + allow_fill=True, + fill_value=value.tz_convert(arr.dtype.tz), + ) + tm.assert_equal(result, expected) + + def test_concat_same_type_invalid(self, arr1d): + # different timezones + arr = arr1d + + if arr.tz is None: + other = arr.tz_localize("UTC") + else: + other = arr.tz_localize(None) + + with pytest.raises(ValueError, match="to_concat must have the same"): + arr._concat_same_type([arr, other]) + + def test_concat_same_type_different_freq(self, unit): + # we *can* concatenate DTI with different freqs. + a = pd.date_range("2000", periods=2, freq="D", tz="US/Central", unit=unit)._data + b = pd.date_range("2000", periods=2, freq="h", tz="US/Central", unit=unit)._data + result = DatetimeArray._concat_same_type([a, b]) + expected = ( + pd.to_datetime( + [ + "2000-01-01 00:00:00", + "2000-01-02 00:00:00", + "2000-01-01 00:00:00", + "2000-01-01 01:00:00", + ] + ) + .tz_localize("US/Central") + .as_unit(unit) + ._data + ) + + tm.assert_datetime_array_equal(result, expected) + + def test_strftime(self, arr1d, using_infer_string): + arr = arr1d + + result = arr.strftime("%Y %b") + expected = np.array([ts.strftime("%Y %b") for ts in arr], dtype=object) + if using_infer_string: + expected = pd.array(expected, dtype=pd.StringDtype(na_value=np.nan)) + tm.assert_equal(result, expected) + + def test_strftime_nat(self, using_infer_string): + # GH 29578 + arr = DatetimeIndex(["2019-01-01", NaT])._data + + result = arr.strftime("%Y-%m-%d") + expected = np.array(["2019-01-01", np.nan], dtype=object) + if using_infer_string: + expected = pd.array(expected, dtype=pd.StringDtype(na_value=np.nan)) + tm.assert_equal(result, expected) + + +class TestTimedeltaArray(SharedTests): + index_cls = TimedeltaIndex + array_cls = TimedeltaArray + scalar_type = pd.Timedelta + example_dtype = "m8[ns]" + + def test_from_tdi(self): + tdi = TimedeltaIndex(["1 Day", "3 Hours"]) + arr = tdi._data + assert list(arr) == list(tdi) + + # Check that Index.__new__ knows what to do with TimedeltaArray + tdi2 = pd.Index(arr) + assert isinstance(tdi2, TimedeltaIndex) + assert list(tdi2) == list(arr) + + def test_astype_object(self): + tdi = TimedeltaIndex(["1 Day", "3 Hours"]) + arr = tdi._data + asobj = arr.astype("O") + assert isinstance(asobj, np.ndarray) + assert asobj.dtype == "O" + assert list(asobj) == list(tdi) + + def test_to_pytimedelta(self, timedelta_index): + tdi = timedelta_index + arr = tdi._data + + expected = tdi.to_pytimedelta() + result = arr.to_pytimedelta() + + tm.assert_numpy_array_equal(result, expected) + + def test_total_seconds(self, timedelta_index): + tdi = timedelta_index + arr = tdi._data + + expected = tdi.total_seconds() + result = arr.total_seconds() + + tm.assert_numpy_array_equal(result, expected.values) + + @pytest.mark.parametrize("propname", TimedeltaArray._field_ops) + def test_int_properties(self, timedelta_index, propname): + tdi = timedelta_index + arr = tdi._data + + result = getattr(arr, propname) + expected = np.array(getattr(tdi, propname), dtype=result.dtype) + + tm.assert_numpy_array_equal(result, expected) + + def test_array_interface(self, timedelta_index): + arr = timedelta_index._data + copy_false = None if np_version_gt2 else False + + # default asarray gives the same underlying data + result = np.asarray(arr) + expected = arr._ndarray + assert result is expected + tm.assert_numpy_array_equal(result, expected) + result = np.array(arr, copy=copy_false) + assert result is expected + tm.assert_numpy_array_equal(result, expected) + + # specifying m8[ns] gives the same result as default + result = np.asarray(arr, dtype="timedelta64[ns]") + expected = arr._ndarray + assert result is expected + tm.assert_numpy_array_equal(result, expected) + result = np.array(arr, dtype="timedelta64[ns]", copy=copy_false) + assert result is expected + tm.assert_numpy_array_equal(result, expected) + result = np.array(arr, dtype="timedelta64[ns]") + if not np_version_gt2: + # TODO: GH 57739 + assert result is not expected + tm.assert_numpy_array_equal(result, expected) + + # to object dtype + result = np.asarray(arr, dtype=object) + expected = np.array(list(arr), dtype=object) + tm.assert_numpy_array_equal(result, expected) + + # to other dtype always copies + result = np.asarray(arr, dtype="int64") + assert result is not arr.asi8 + assert not np.may_share_memory(arr, result) + expected = arr.asi8.copy() + tm.assert_numpy_array_equal(result, expected) + + # other dtypes handled by numpy + for dtype in ["float64", str]: + result = np.asarray(arr, dtype=dtype) + expected = np.asarray(arr).astype(dtype) + tm.assert_numpy_array_equal(result, expected) + + def test_take_fill_valid(self, timedelta_index, fixed_now_ts): + tdi = timedelta_index + arr = tdi._data + + td1 = pd.Timedelta(days=1) + result = arr.take([-1, 1], allow_fill=True, fill_value=td1) + assert result[0] == td1 + + value = fixed_now_ts + msg = f"value should be a '{arr._scalar_type.__name__}' or 'NaT'. Got" + with pytest.raises(TypeError, match=msg): + # fill_value Timestamp invalid + arr.take([0, 1], allow_fill=True, fill_value=value) + + value = fixed_now_ts.to_period("D") + with pytest.raises(TypeError, match=msg): + # fill_value Period invalid + arr.take([0, 1], allow_fill=True, fill_value=value) + + value = np.datetime64("NaT", "ns") + with pytest.raises(TypeError, match=msg): + # require appropriate-dtype if we have a NA value + arr.take([-1, 1], allow_fill=True, fill_value=value) + + +@pytest.mark.filterwarnings(r"ignore:Period with BDay freq is deprecated:FutureWarning") +@pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") +class TestPeriodArray(SharedTests): + index_cls = PeriodIndex + array_cls = PeriodArray + scalar_type = Period + example_dtype = PeriodIndex([], freq="W").dtype + + @pytest.fixture + def arr1d(self, period_index): + """ + Fixture returning DatetimeArray from parametrized PeriodIndex objects + """ + return period_index._data + + def test_from_pi(self, arr1d): + pi = self.index_cls(arr1d) + arr = arr1d + assert list(arr) == list(pi) + + # Check that Index.__new__ knows what to do with PeriodArray + pi2 = pd.Index(arr) + assert isinstance(pi2, PeriodIndex) + assert list(pi2) == list(arr) + + def test_astype_object(self, arr1d): + pi = self.index_cls(arr1d) + arr = arr1d + asobj = arr.astype("O") + assert isinstance(asobj, np.ndarray) + assert asobj.dtype == "O" + assert list(asobj) == list(pi) + + def test_take_fill_valid(self, arr1d): + arr = arr1d + + value = NaT._value + msg = f"value should be a '{arr1d._scalar_type.__name__}' or 'NaT'. Got" + with pytest.raises(TypeError, match=msg): + # require NaT, not iNaT, as it could be confused with an integer + arr.take([-1, 1], allow_fill=True, fill_value=value) + + value = np.timedelta64("NaT", "ns") + with pytest.raises(TypeError, match=msg): + # require appropriate-dtype if we have a NA value + arr.take([-1, 1], allow_fill=True, fill_value=value) + + @pytest.mark.parametrize("how", ["S", "E"]) + def test_to_timestamp(self, how, arr1d): + pi = self.index_cls(arr1d) + arr = arr1d + + expected = DatetimeIndex(pi.to_timestamp(how=how))._data + result = arr.to_timestamp(how=how) + assert isinstance(result, DatetimeArray) + + tm.assert_equal(result, expected) + + def test_to_timestamp_roundtrip_bday(self): + # Case where infer_freq inside would choose "D" instead of "B" + dta = pd.date_range("2021-10-18", periods=3, freq="B")._data + parr = dta.to_period() + result = parr.to_timestamp() + assert result.freq == "B" + tm.assert_extension_array_equal(result, dta) + + dta2 = dta[::2] + parr2 = dta2.to_period() + result2 = parr2.to_timestamp() + assert result2.freq == "2B" + tm.assert_extension_array_equal(result2, dta2) + + parr3 = dta.to_period("2B") + result3 = parr3.to_timestamp() + assert result3.freq == "B" + tm.assert_extension_array_equal(result3, dta) + + def test_to_timestamp_out_of_bounds(self): + # GH#19643 previously overflowed silently + pi = pd.period_range("1500", freq="Y", periods=3) + msg = "Out of bounds nanosecond timestamp: 1500-01-01 00:00:00" + with pytest.raises(OutOfBoundsDatetime, match=msg): + pi.to_timestamp() + + with pytest.raises(OutOfBoundsDatetime, match=msg): + pi._data.to_timestamp() + + @pytest.mark.parametrize("propname", PeriodArray._bool_ops) + def test_bool_properties(self, arr1d, propname): + # in this case _bool_ops is just `is_leap_year` + pi = self.index_cls(arr1d) + arr = arr1d + + result = getattr(arr, propname) + expected = np.array(getattr(pi, propname)) + + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize("propname", PeriodArray._field_ops) + def test_int_properties(self, arr1d, propname): + pi = self.index_cls(arr1d) + arr = arr1d + + result = getattr(arr, propname) + expected = np.array(getattr(pi, propname)) + + tm.assert_numpy_array_equal(result, expected) + + def test_array_interface(self, arr1d): + arr = arr1d + + # default asarray gives objects + result = np.asarray(arr) + expected = np.array(list(arr), dtype=object) + tm.assert_numpy_array_equal(result, expected) + + # to object dtype (same as default) + result = np.asarray(arr, dtype=object) + tm.assert_numpy_array_equal(result, expected) + + # to int64 gives the underlying representation + result = np.asarray(arr, dtype="int64") + tm.assert_numpy_array_equal(result, arr.asi8) + + result2 = np.asarray(arr, dtype="int64") + assert np.may_share_memory(result, result2) + + result_copy1 = np.array(arr, dtype="int64", copy=True) + result_copy2 = np.array(arr, dtype="int64", copy=True) + assert not np.may_share_memory(result_copy1, result_copy2) + + # to other dtypes + msg = r"float\(\) argument must be a string or a( real)? number, not 'Period'" + with pytest.raises(TypeError, match=msg): + np.asarray(arr, dtype="float64") + + result = np.asarray(arr, dtype="S20") + expected = np.asarray(arr).astype("S20") + tm.assert_numpy_array_equal(result, expected) + + def test_strftime(self, arr1d, using_infer_string): + arr = arr1d + + result = arr.strftime("%Y") + expected = np.array([per.strftime("%Y") for per in arr], dtype=object) + if using_infer_string: + expected = pd.array(expected, dtype=pd.StringDtype(na_value=np.nan)) + tm.assert_equal(result, expected) + + def test_strftime_nat(self, using_infer_string): + # GH 29578 + arr = PeriodArray(PeriodIndex(["2019-01-01", NaT], dtype="period[D]")) + + result = arr.strftime("%Y-%m-%d") + expected = np.array(["2019-01-01", np.nan], dtype=object) + if using_infer_string: + expected = pd.array(expected, dtype=pd.StringDtype(na_value=np.nan)) + tm.assert_equal(result, expected) + + +@pytest.mark.parametrize( + "arr,casting_nats", + [ + ( + TimedeltaIndex(["1 Day", "3 Hours", "NaT"])._data, + (NaT, np.timedelta64("NaT", "ns")), + ), + ( + pd.date_range("2000-01-01", periods=3, freq="D")._data, + (NaT, np.datetime64("NaT", "ns")), + ), + (pd.period_range("2000-01-01", periods=3, freq="D")._data, (NaT,)), + ], + ids=lambda x: type(x).__name__, +) +def test_casting_nat_setitem_array(arr, casting_nats): + expected = type(arr)._from_sequence([NaT, arr[1], arr[2]], dtype=arr.dtype) + + for nat in casting_nats: + arr = arr.copy() + arr[0] = nat + tm.assert_equal(arr, expected) + + +@pytest.mark.parametrize( + "arr,non_casting_nats", + [ + ( + TimedeltaIndex(["1 Day", "3 Hours", "NaT"])._data, + (np.datetime64("NaT", "ns"), NaT._value), + ), + ( + pd.date_range("2000-01-01", periods=3, freq="D")._data, + (np.timedelta64("NaT", "ns"), NaT._value), + ), + ( + pd.period_range("2000-01-01", periods=3, freq="D")._data, + (np.datetime64("NaT", "ns"), np.timedelta64("NaT", "ns"), NaT._value), + ), + ], + ids=lambda x: type(x).__name__, +) +def test_invalid_nat_setitem_array(arr, non_casting_nats): + msg = ( + "value should be a '(Timestamp|Timedelta|Period)', 'NaT', or array of those. " + "Got '(timedelta64|datetime64|int)' instead." + ) + + for nat in non_casting_nats: + with pytest.raises(TypeError, match=msg): + arr[0] = nat + + +@pytest.mark.parametrize( + "arr", + [ + pd.date_range("2000", periods=4).array, + pd.timedelta_range("2000", periods=4).array, + ], +) +def test_to_numpy_extra(arr): + arr[0] = NaT + original = arr.copy() + + result = arr.to_numpy() + assert np.isnan(result[0]) + + result = arr.to_numpy(dtype="int64") + assert result[0] == -9223372036854775808 + + result = arr.to_numpy(dtype="int64", na_value=0) + assert result[0] == 0 + + result = arr.to_numpy(na_value=arr[1].to_numpy()) + assert result[0] == result[1] + + result = arr.to_numpy(na_value=arr[1].to_numpy(copy=False)) + assert result[0] == result[1] + + tm.assert_equal(arr, original) + + +@pytest.mark.parametrize("as_index", [True, False]) +@pytest.mark.parametrize( + "values", + [ + pd.to_datetime(["2020-01-01", "2020-02-01"]), + pd.to_timedelta([1, 2], unit="D"), + PeriodIndex(["2020-01-01", "2020-02-01"], freq="D"), + ], +) +@pytest.mark.parametrize( + "klass", + [ + list, + np.array, + pd.array, + pd.Series, + pd.Index, + pd.Categorical, + pd.CategoricalIndex, + ], +) +def test_searchsorted_datetimelike_with_listlike(values, klass, as_index): + # https://github.com/pandas-dev/pandas/issues/32762 + if not as_index: + values = values._data + + result = values.searchsorted(klass(values)) + expected = np.array([0, 1], dtype=result.dtype) + + tm.assert_numpy_array_equal(result, expected) + + +@pytest.mark.parametrize( + "values", + [ + pd.to_datetime(["2020-01-01", "2020-02-01"]), + pd.to_timedelta([1, 2], unit="D"), + PeriodIndex(["2020-01-01", "2020-02-01"], freq="D"), + ], +) +@pytest.mark.parametrize( + "arg", [[1, 2], ["a", "b"], [Timestamp("2020-01-01", tz="Europe/London")] * 2] +) +def test_searchsorted_datetimelike_with_listlike_invalid_dtype(values, arg): + # https://github.com/pandas-dev/pandas/issues/32762 + msg = "[Unexpected type|Cannot compare]" + with pytest.raises(TypeError, match=msg): + values.searchsorted(arg) + + +@pytest.mark.parametrize("klass", [list, tuple, np.array, pd.Series]) +def test_period_index_construction_from_strings(klass): + # https://github.com/pandas-dev/pandas/issues/26109 + strings = ["2020Q1", "2020Q2"] * 2 + data = klass(strings) + result = PeriodIndex(data, freq="Q") + expected = PeriodIndex([Period(s) for s in strings]) + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize("dtype", ["M8[ns]", "m8[ns]"]) +def test_from_pandas_array(dtype): + # GH#24615 + data = np.array([1, 2, 3], dtype=dtype) + arr = NumpyExtensionArray(data) + + cls = {"M8[ns]": DatetimeArray, "m8[ns]": TimedeltaArray}[dtype] + + depr_msg = f"{cls.__name__}.__init__ is deprecated" + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + result = cls(arr) + expected = cls(data) + tm.assert_extension_array_equal(result, expected) + + result = cls._from_sequence(arr, dtype=dtype) + expected = cls._from_sequence(data, dtype=dtype) + tm.assert_extension_array_equal(result, expected) + + func = {"M8[ns]": pd.to_datetime, "m8[ns]": pd.to_timedelta}[dtype] + result = func(arr).array + expected = func(data).array + tm.assert_equal(result, expected) + + # Let's check the Indexes while we're here + idx_cls = {"M8[ns]": DatetimeIndex, "m8[ns]": TimedeltaIndex}[dtype] + result = idx_cls(arr) + expected = idx_cls(data) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/test_datetimes.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/test_datetimes.py new file mode 100644 index 0000000000000000000000000000000000000000..8f0576cc65a2787edacdb1e377a02287d1caaff1 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/test_datetimes.py @@ -0,0 +1,840 @@ +""" +Tests for DatetimeArray +""" +from __future__ import annotations + +from datetime import timedelta +import operator + +try: + from zoneinfo import ZoneInfo +except ImportError: + # Cannot assign to a type + ZoneInfo = None # type: ignore[misc, assignment] + +import numpy as np +import pytest + +from pandas._libs.tslibs import tz_compare + +from pandas.core.dtypes.dtypes import DatetimeTZDtype + +import pandas as pd +import pandas._testing as tm +from pandas.core.arrays import ( + DatetimeArray, + TimedeltaArray, +) + + +class TestNonNano: + @pytest.fixture(params=["s", "ms", "us"]) + def unit(self, request): + """Fixture returning parametrized time units""" + return request.param + + @pytest.fixture + def dtype(self, unit, tz_naive_fixture): + tz = tz_naive_fixture + if tz is None: + return np.dtype(f"datetime64[{unit}]") + else: + return DatetimeTZDtype(unit=unit, tz=tz) + + @pytest.fixture + def dta_dti(self, unit, dtype): + tz = getattr(dtype, "tz", None) + + dti = pd.date_range("2016-01-01", periods=55, freq="D", tz=tz) + if tz is None: + arr = np.asarray(dti).astype(f"M8[{unit}]") + else: + arr = np.asarray(dti.tz_convert("UTC").tz_localize(None)).astype( + f"M8[{unit}]" + ) + + dta = DatetimeArray._simple_new(arr, dtype=dtype) + return dta, dti + + @pytest.fixture + def dta(self, dta_dti): + dta, dti = dta_dti + return dta + + def test_non_nano(self, unit, dtype): + arr = np.arange(5, dtype=np.int64).view(f"M8[{unit}]") + dta = DatetimeArray._simple_new(arr, dtype=dtype) + + assert dta.dtype == dtype + assert dta[0].unit == unit + assert tz_compare(dta.tz, dta[0].tz) + assert (dta[0] == dta[:1]).all() + + @pytest.mark.parametrize( + "field", DatetimeArray._field_ops + DatetimeArray._bool_ops + ) + def test_fields(self, unit, field, dtype, dta_dti): + dta, dti = dta_dti + + assert (dti == dta).all() + + res = getattr(dta, field) + expected = getattr(dti._data, field) + tm.assert_numpy_array_equal(res, expected) + + def test_normalize(self, unit): + dti = pd.date_range("2016-01-01 06:00:00", periods=55, freq="D") + arr = np.asarray(dti).astype(f"M8[{unit}]") + + dta = DatetimeArray._simple_new(arr, dtype=arr.dtype) + + assert not dta.is_normalized + + # TODO: simplify once we can just .astype to other unit + exp = np.asarray(dti.normalize()).astype(f"M8[{unit}]") + expected = DatetimeArray._simple_new(exp, dtype=exp.dtype) + + res = dta.normalize() + tm.assert_extension_array_equal(res, expected) + + def test_simple_new_requires_match(self, unit): + arr = np.arange(5, dtype=np.int64).view(f"M8[{unit}]") + dtype = DatetimeTZDtype(unit, "UTC") + + dta = DatetimeArray._simple_new(arr, dtype=dtype) + assert dta.dtype == dtype + + wrong = DatetimeTZDtype("ns", "UTC") + with pytest.raises(AssertionError, match=""): + DatetimeArray._simple_new(arr, dtype=wrong) + + def test_std_non_nano(self, unit): + dti = pd.date_range("2016-01-01", periods=55, freq="D") + arr = np.asarray(dti).astype(f"M8[{unit}]") + + dta = DatetimeArray._simple_new(arr, dtype=arr.dtype) + + # we should match the nano-reso std, but floored to our reso. + res = dta.std() + assert res._creso == dta._creso + assert res == dti.std().floor(unit) + + @pytest.mark.filterwarnings("ignore:Converting to PeriodArray.*:UserWarning") + def test_to_period(self, dta_dti): + dta, dti = dta_dti + result = dta.to_period("D") + expected = dti._data.to_period("D") + + tm.assert_extension_array_equal(result, expected) + + def test_iter(self, dta): + res = next(iter(dta)) + expected = dta[0] + + assert type(res) is pd.Timestamp + assert res._value == expected._value + assert res._creso == expected._creso + assert res == expected + + def test_astype_object(self, dta): + result = dta.astype(object) + assert all(x._creso == dta._creso for x in result) + assert all(x == y for x, y in zip(result, dta)) + + def test_to_pydatetime(self, dta_dti): + dta, dti = dta_dti + + result = dta.to_pydatetime() + expected = dti.to_pydatetime() + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize("meth", ["time", "timetz", "date"]) + def test_time_date(self, dta_dti, meth): + dta, dti = dta_dti + + result = getattr(dta, meth) + expected = getattr(dti, meth) + tm.assert_numpy_array_equal(result, expected) + + def test_format_native_types(self, unit, dtype, dta_dti): + # In this case we should get the same formatted values with our nano + # version dti._data as we do with the non-nano dta + dta, dti = dta_dti + + res = dta._format_native_types() + exp = dti._data._format_native_types() + tm.assert_numpy_array_equal(res, exp) + + def test_repr(self, dta_dti, unit): + dta, dti = dta_dti + + assert repr(dta) == repr(dti._data).replace("[ns", f"[{unit}") + + # TODO: tests with td64 + def test_compare_mismatched_resolutions(self, comparison_op): + # comparison that numpy gets wrong bc of silent overflows + op = comparison_op + + iinfo = np.iinfo(np.int64) + vals = np.array([iinfo.min, iinfo.min + 1, iinfo.max], dtype=np.int64) + + # Construct so that arr2[1] < arr[1] < arr[2] < arr2[2] + arr = np.array(vals).view("M8[ns]") + arr2 = arr.view("M8[s]") + + left = DatetimeArray._simple_new(arr, dtype=arr.dtype) + right = DatetimeArray._simple_new(arr2, dtype=arr2.dtype) + + if comparison_op is operator.eq: + expected = np.array([False, False, False]) + elif comparison_op is operator.ne: + expected = np.array([True, True, True]) + elif comparison_op in [operator.lt, operator.le]: + expected = np.array([False, False, True]) + else: + expected = np.array([False, True, False]) + + result = op(left, right) + tm.assert_numpy_array_equal(result, expected) + + result = op(left[1], right) + tm.assert_numpy_array_equal(result, expected) + + if op not in [operator.eq, operator.ne]: + # check that numpy still gets this wrong; if it is fixed we may be + # able to remove compare_mismatched_resolutions + np_res = op(left._ndarray, right._ndarray) + tm.assert_numpy_array_equal(np_res[1:], ~expected[1:]) + + def test_add_mismatched_reso_doesnt_downcast(self): + # https://github.com/pandas-dev/pandas/pull/48748#issuecomment-1260181008 + td = pd.Timedelta(microseconds=1) + dti = pd.date_range("2016-01-01", periods=3) - td + dta = dti._data.as_unit("us") + + res = dta + td.as_unit("us") + # even though the result is an even number of days + # (so we _could_ downcast to unit="s"), we do not. + assert res.unit == "us" + + @pytest.mark.parametrize( + "scalar", + [ + timedelta(hours=2), + pd.Timedelta(hours=2), + np.timedelta64(2, "h"), + np.timedelta64(2 * 3600 * 1000, "ms"), + pd.offsets.Minute(120), + pd.offsets.Hour(2), + ], + ) + def test_add_timedeltalike_scalar_mismatched_reso(self, dta_dti, scalar): + dta, dti = dta_dti + + td = pd.Timedelta(scalar) + exp_unit = tm.get_finest_unit(dta.unit, td.unit) + + expected = (dti + td)._data.as_unit(exp_unit) + result = dta + scalar + tm.assert_extension_array_equal(result, expected) + + result = scalar + dta + tm.assert_extension_array_equal(result, expected) + + expected = (dti - td)._data.as_unit(exp_unit) + result = dta - scalar + tm.assert_extension_array_equal(result, expected) + + def test_sub_datetimelike_scalar_mismatch(self): + dti = pd.date_range("2016-01-01", periods=3) + dta = dti._data.as_unit("us") + + ts = dta[0].as_unit("s") + + result = dta - ts + expected = (dti - dti[0])._data.as_unit("us") + assert result.dtype == "m8[us]" + tm.assert_extension_array_equal(result, expected) + + def test_sub_datetime64_reso_mismatch(self): + dti = pd.date_range("2016-01-01", periods=3) + left = dti._data.as_unit("s") + right = left.as_unit("ms") + + result = left - right + exp_values = np.array([0, 0, 0], dtype="m8[ms]") + expected = TimedeltaArray._simple_new( + exp_values, + dtype=exp_values.dtype, + ) + tm.assert_extension_array_equal(result, expected) + result2 = right - left + tm.assert_extension_array_equal(result2, expected) + + +class TestDatetimeArrayComparisons: + # TODO: merge this into tests/arithmetic/test_datetime64 once it is + # sufficiently robust + + def test_cmp_dt64_arraylike_tznaive(self, comparison_op): + # arbitrary tz-naive DatetimeIndex + op = comparison_op + + dti = pd.date_range("2016-01-1", freq="MS", periods=9, tz=None) + arr = dti._data + assert arr.freq == dti.freq + assert arr.tz == dti.tz + + right = dti + + expected = np.ones(len(arr), dtype=bool) + if comparison_op.__name__ in ["ne", "gt", "lt"]: + # for these the comparisons should be all-False + expected = ~expected + + result = op(arr, arr) + tm.assert_numpy_array_equal(result, expected) + for other in [ + right, + np.array(right), + list(right), + tuple(right), + right.astype(object), + ]: + result = op(arr, other) + tm.assert_numpy_array_equal(result, expected) + + result = op(other, arr) + tm.assert_numpy_array_equal(result, expected) + + +class TestDatetimeArray: + def test_astype_ns_to_ms_near_bounds(self): + # GH#55979 + ts = pd.Timestamp("1677-09-21 00:12:43.145225") + target = ts.as_unit("ms") + + dta = DatetimeArray._from_sequence([ts], dtype="M8[ns]") + assert (dta.view("i8") == ts.as_unit("ns").value).all() + + result = dta.astype("M8[ms]") + assert result[0] == target + + expected = DatetimeArray._from_sequence([ts], dtype="M8[ms]") + assert (expected.view("i8") == target._value).all() + + tm.assert_datetime_array_equal(result, expected) + + def test_astype_non_nano_tznaive(self): + dti = pd.date_range("2016-01-01", periods=3) + + res = dti.astype("M8[s]") + assert res.dtype == "M8[s]" + + dta = dti._data + res = dta.astype("M8[s]") + assert res.dtype == "M8[s]" + assert isinstance(res, pd.core.arrays.DatetimeArray) # used to be ndarray + + def test_astype_non_nano_tzaware(self): + dti = pd.date_range("2016-01-01", periods=3, tz="UTC") + + res = dti.astype("M8[s, US/Pacific]") + assert res.dtype == "M8[s, US/Pacific]" + + dta = dti._data + res = dta.astype("M8[s, US/Pacific]") + assert res.dtype == "M8[s, US/Pacific]" + + # from non-nano to non-nano, preserving reso + res2 = res.astype("M8[s, UTC]") + assert res2.dtype == "M8[s, UTC]" + assert not tm.shares_memory(res2, res) + + res3 = res.astype("M8[s, UTC]", copy=False) + assert res2.dtype == "M8[s, UTC]" + assert tm.shares_memory(res3, res) + + def test_astype_to_same(self): + arr = DatetimeArray._from_sequence( + ["2000"], dtype=DatetimeTZDtype(tz="US/Central") + ) + result = arr.astype(DatetimeTZDtype(tz="US/Central"), copy=False) + assert result is arr + + @pytest.mark.parametrize("dtype", ["datetime64[ns]", "datetime64[ns, UTC]"]) + @pytest.mark.parametrize( + "other", ["datetime64[ns]", "datetime64[ns, UTC]", "datetime64[ns, CET]"] + ) + def test_astype_copies(self, dtype, other): + # https://github.com/pandas-dev/pandas/pull/32490 + ser = pd.Series([1, 2], dtype=dtype) + orig = ser.copy() + + err = False + if (dtype == "datetime64[ns]") ^ (other == "datetime64[ns]"): + # deprecated in favor of tz_localize + err = True + + if err: + if dtype == "datetime64[ns]": + msg = "Use obj.tz_localize instead or series.dt.tz_localize instead" + else: + msg = "from timezone-aware dtype to timezone-naive dtype" + with pytest.raises(TypeError, match=msg): + ser.astype(other) + else: + t = ser.astype(other) + t[:] = pd.NaT + tm.assert_series_equal(ser, orig) + + @pytest.mark.parametrize("dtype", [int, np.int32, np.int64, "uint32", "uint64"]) + def test_astype_int(self, dtype): + arr = DatetimeArray._from_sequence( + [pd.Timestamp("2000"), pd.Timestamp("2001")], dtype="M8[ns]" + ) + + if np.dtype(dtype) != np.int64: + with pytest.raises(TypeError, match=r"Do obj.astype\('int64'\)"): + arr.astype(dtype) + return + + result = arr.astype(dtype) + expected = arr._ndarray.view("i8") + tm.assert_numpy_array_equal(result, expected) + + def test_astype_to_sparse_dt64(self): + # GH#50082 + dti = pd.date_range("2016-01-01", periods=4) + dta = dti._data + result = dta.astype("Sparse[datetime64[ns]]") + + assert result.dtype == "Sparse[datetime64[ns]]" + assert (result == dta).all() + + def test_tz_setter_raises(self): + arr = DatetimeArray._from_sequence( + ["2000"], dtype=DatetimeTZDtype(tz="US/Central") + ) + with pytest.raises(AttributeError, match="tz_localize"): + arr.tz = "UTC" + + def test_setitem_str_impute_tz(self, tz_naive_fixture): + # Like for getitem, if we are passed a naive-like string, we impute + # our own timezone. + tz = tz_naive_fixture + + data = np.array([1, 2, 3], dtype="M8[ns]") + dtype = data.dtype if tz is None else DatetimeTZDtype(tz=tz) + arr = DatetimeArray._from_sequence(data, dtype=dtype) + expected = arr.copy() + + ts = pd.Timestamp("2020-09-08 16:50").tz_localize(tz) + setter = str(ts.tz_localize(None)) + + # Setting a scalar tznaive string + expected[0] = ts + arr[0] = setter + tm.assert_equal(arr, expected) + + # Setting a listlike of tznaive strings + expected[1] = ts + arr[:2] = [setter, setter] + tm.assert_equal(arr, expected) + + def test_setitem_different_tz_raises(self): + # pre-2.0 we required exact tz match, in 2.0 we require only + # tzawareness-match + data = np.array([1, 2, 3], dtype="M8[ns]") + arr = DatetimeArray._from_sequence( + data, copy=False, dtype=DatetimeTZDtype(tz="US/Central") + ) + with pytest.raises(TypeError, match="Cannot compare tz-naive and tz-aware"): + arr[0] = pd.Timestamp("2000") + + ts = pd.Timestamp("2000", tz="US/Eastern") + arr[0] = ts + assert arr[0] == ts.tz_convert("US/Central") + + def test_setitem_clears_freq(self): + a = pd.date_range("2000", periods=2, freq="D", tz="US/Central")._data + a[0] = pd.Timestamp("2000", tz="US/Central") + assert a.freq is None + + @pytest.mark.parametrize( + "obj", + [ + pd.Timestamp("2021-01-01"), + pd.Timestamp("2021-01-01").to_datetime64(), + pd.Timestamp("2021-01-01").to_pydatetime(), + ], + ) + def test_setitem_objects(self, obj): + # make sure we accept datetime64 and datetime in addition to Timestamp + dti = pd.date_range("2000", periods=2, freq="D") + arr = dti._data + + arr[0] = obj + assert arr[0] == obj + + def test_repeat_preserves_tz(self): + dti = pd.date_range("2000", periods=2, freq="D", tz="US/Central") + arr = dti._data + + repeated = arr.repeat([1, 1]) + + # preserves tz and values, but not freq + expected = DatetimeArray._from_sequence(arr.asi8, dtype=arr.dtype) + tm.assert_equal(repeated, expected) + + def test_value_counts_preserves_tz(self): + dti = pd.date_range("2000", periods=2, freq="D", tz="US/Central") + arr = dti._data.repeat([4, 3]) + + result = arr.value_counts() + + # Note: not tm.assert_index_equal, since `freq`s do not match + assert result.index.equals(dti) + + arr[-2] = pd.NaT + result = arr.value_counts(dropna=False) + expected = pd.Series([4, 2, 1], index=[dti[0], dti[1], pd.NaT], name="count") + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("method", ["pad", "backfill"]) + def test_fillna_preserves_tz(self, method): + dti = pd.date_range("2000-01-01", periods=5, freq="D", tz="US/Central") + arr = DatetimeArray._from_sequence(dti, copy=True) + arr[2] = pd.NaT + + fill_val = dti[1] if method == "pad" else dti[3] + expected = DatetimeArray._from_sequence( + [dti[0], dti[1], fill_val, dti[3], dti[4]], + dtype=DatetimeTZDtype(tz="US/Central"), + ) + + result = arr._pad_or_backfill(method=method) + tm.assert_extension_array_equal(result, expected) + + # assert that arr and dti were not modified in-place + assert arr[2] is pd.NaT + assert dti[2] == pd.Timestamp("2000-01-03", tz="US/Central") + + def test_fillna_2d(self): + dti = pd.date_range("2016-01-01", periods=6, tz="US/Pacific") + dta = dti._data.reshape(3, 2).copy() + dta[0, 1] = pd.NaT + dta[1, 0] = pd.NaT + + res1 = dta._pad_or_backfill(method="pad") + expected1 = dta.copy() + expected1[1, 0] = dta[0, 0] + tm.assert_extension_array_equal(res1, expected1) + + res2 = dta._pad_or_backfill(method="backfill") + expected2 = dta.copy() + expected2 = dta.copy() + expected2[1, 0] = dta[2, 0] + expected2[0, 1] = dta[1, 1] + tm.assert_extension_array_equal(res2, expected2) + + # with different ordering for underlying ndarray; behavior should + # be unchanged + dta2 = dta._from_backing_data(dta._ndarray.copy(order="F")) + assert dta2._ndarray.flags["F_CONTIGUOUS"] + assert not dta2._ndarray.flags["C_CONTIGUOUS"] + tm.assert_extension_array_equal(dta, dta2) + + res3 = dta2._pad_or_backfill(method="pad") + tm.assert_extension_array_equal(res3, expected1) + + res4 = dta2._pad_or_backfill(method="backfill") + tm.assert_extension_array_equal(res4, expected2) + + # test the DataFrame method while we're here + df = pd.DataFrame(dta) + res = df.ffill() + expected = pd.DataFrame(expected1) + tm.assert_frame_equal(res, expected) + + res = df.bfill() + expected = pd.DataFrame(expected2) + tm.assert_frame_equal(res, expected) + + def test_array_interface_tz(self): + tz = "US/Central" + data = pd.date_range("2017", periods=2, tz=tz)._data + result = np.asarray(data) + + expected = np.array( + [ + pd.Timestamp("2017-01-01T00:00:00", tz=tz), + pd.Timestamp("2017-01-02T00:00:00", tz=tz), + ], + dtype=object, + ) + tm.assert_numpy_array_equal(result, expected) + + result = np.asarray(data, dtype=object) + tm.assert_numpy_array_equal(result, expected) + + result = np.asarray(data, dtype="M8[ns]") + + expected = np.array( + ["2017-01-01T06:00:00", "2017-01-02T06:00:00"], dtype="M8[ns]" + ) + tm.assert_numpy_array_equal(result, expected) + + def test_array_interface(self): + data = pd.date_range("2017", periods=2)._data + expected = np.array( + ["2017-01-01T00:00:00", "2017-01-02T00:00:00"], dtype="datetime64[ns]" + ) + + result = np.asarray(data) + tm.assert_numpy_array_equal(result, expected) + + result = np.asarray(data, dtype=object) + expected = np.array( + [pd.Timestamp("2017-01-01T00:00:00"), pd.Timestamp("2017-01-02T00:00:00")], + dtype=object, + ) + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize("index", [True, False]) + def test_searchsorted_different_tz(self, index): + data = np.arange(10, dtype="i8") * 24 * 3600 * 10**9 + arr = pd.DatetimeIndex(data, freq="D")._data.tz_localize("Asia/Tokyo") + if index: + arr = pd.Index(arr) + + expected = arr.searchsorted(arr[2]) + result = arr.searchsorted(arr[2].tz_convert("UTC")) + assert result == expected + + expected = arr.searchsorted(arr[2:6]) + result = arr.searchsorted(arr[2:6].tz_convert("UTC")) + tm.assert_equal(result, expected) + + @pytest.mark.parametrize("index", [True, False]) + def test_searchsorted_tzawareness_compat(self, index): + data = np.arange(10, dtype="i8") * 24 * 3600 * 10**9 + arr = pd.DatetimeIndex(data, freq="D")._data + if index: + arr = pd.Index(arr) + + mismatch = arr.tz_localize("Asia/Tokyo") + + msg = "Cannot compare tz-naive and tz-aware datetime-like objects" + with pytest.raises(TypeError, match=msg): + arr.searchsorted(mismatch[0]) + with pytest.raises(TypeError, match=msg): + arr.searchsorted(mismatch) + + with pytest.raises(TypeError, match=msg): + mismatch.searchsorted(arr[0]) + with pytest.raises(TypeError, match=msg): + mismatch.searchsorted(arr) + + @pytest.mark.parametrize( + "other", + [ + 1, + np.int64(1), + 1.0, + np.timedelta64("NaT"), + pd.Timedelta(days=2), + "invalid", + np.arange(10, dtype="i8") * 24 * 3600 * 10**9, + np.arange(10).view("timedelta64[ns]") * 24 * 3600 * 10**9, + pd.Timestamp("2021-01-01").to_period("D"), + ], + ) + @pytest.mark.parametrize("index", [True, False]) + def test_searchsorted_invalid_types(self, other, index): + data = np.arange(10, dtype="i8") * 24 * 3600 * 10**9 + arr = pd.DatetimeIndex(data, freq="D")._data + if index: + arr = pd.Index(arr) + + msg = "|".join( + [ + "searchsorted requires compatible dtype or scalar", + "value should be a 'Timestamp', 'NaT', or array of those. Got", + ] + ) + with pytest.raises(TypeError, match=msg): + arr.searchsorted(other) + + def test_shift_fill_value(self): + dti = pd.date_range("2016-01-01", periods=3) + + dta = dti._data + expected = DatetimeArray._from_sequence(np.roll(dta._ndarray, 1)) + + fv = dta[-1] + for fill_value in [fv, fv.to_pydatetime(), fv.to_datetime64()]: + result = dta.shift(1, fill_value=fill_value) + tm.assert_datetime_array_equal(result, expected) + + dta = dta.tz_localize("UTC") + expected = expected.tz_localize("UTC") + fv = dta[-1] + for fill_value in [fv, fv.to_pydatetime()]: + result = dta.shift(1, fill_value=fill_value) + tm.assert_datetime_array_equal(result, expected) + + def test_shift_value_tzawareness_mismatch(self): + dti = pd.date_range("2016-01-01", periods=3) + + dta = dti._data + + fv = dta[-1].tz_localize("UTC") + for invalid in [fv, fv.to_pydatetime()]: + with pytest.raises(TypeError, match="Cannot compare"): + dta.shift(1, fill_value=invalid) + + dta = dta.tz_localize("UTC") + fv = dta[-1].tz_localize(None) + for invalid in [fv, fv.to_pydatetime(), fv.to_datetime64()]: + with pytest.raises(TypeError, match="Cannot compare"): + dta.shift(1, fill_value=invalid) + + def test_shift_requires_tzmatch(self): + # pre-2.0 we required exact tz match, in 2.0 we require just + # matching tzawareness + dti = pd.date_range("2016-01-01", periods=3, tz="UTC") + dta = dti._data + + fill_value = pd.Timestamp("2020-10-18 18:44", tz="US/Pacific") + + result = dta.shift(1, fill_value=fill_value) + expected = dta.shift(1, fill_value=fill_value.tz_convert("UTC")) + tm.assert_equal(result, expected) + + def test_tz_localize_t2d(self): + dti = pd.date_range("1994-05-12", periods=12, tz="US/Pacific") + dta = dti._data.reshape(3, 4) + result = dta.tz_localize(None) + + expected = dta.ravel().tz_localize(None).reshape(dta.shape) + tm.assert_datetime_array_equal(result, expected) + + roundtrip = expected.tz_localize("US/Pacific") + tm.assert_datetime_array_equal(roundtrip, dta) + + easts = ["US/Eastern", "dateutil/US/Eastern"] + if ZoneInfo is not None: + try: + tz = ZoneInfo("US/Eastern") + except KeyError: + # no tzdata + pass + else: + # Argument 1 to "append" of "list" has incompatible type "ZoneInfo"; + # expected "str" + easts.append(tz) # type: ignore[arg-type] + + @pytest.mark.parametrize("tz", easts) + def test_iter_zoneinfo_fold(self, tz): + # GH#49684 + utc_vals = np.array( + [1320552000, 1320555600, 1320559200, 1320562800], dtype=np.int64 + ) + utc_vals *= 1_000_000_000 + + dta = DatetimeArray._from_sequence(utc_vals).tz_localize("UTC").tz_convert(tz) + + left = dta[2] + right = list(dta)[2] + assert str(left) == str(right) + # previously there was a bug where with non-pytz right would be + # Timestamp('2011-11-06 01:00:00-0400', tz='US/Eastern') + # while left would be + # Timestamp('2011-11-06 01:00:00-0500', tz='US/Eastern') + # The .value's would match (so they would compare as equal), + # but the folds would not + assert left.utcoffset() == right.utcoffset() + + # The same bug in ints_to_pydatetime affected .astype, so we test + # that here. + right2 = dta.astype(object)[2] + assert str(left) == str(right2) + assert left.utcoffset() == right2.utcoffset() + + @pytest.mark.parametrize( + "freq, freq_depr", + [ + ("2ME", "2M"), + ("2SME", "2SM"), + ("2SME", "2sm"), + ("2QE", "2Q"), + ("2QE-SEP", "2Q-SEP"), + ("1YE", "1Y"), + ("2YE-MAR", "2Y-MAR"), + ("1YE", "1A"), + ("2YE-MAR", "2A-MAR"), + ("2ME", "2m"), + ("2QE-SEP", "2q-sep"), + ("2YE-MAR", "2a-mar"), + ("2YE", "2y"), + ], + ) + def test_date_range_frequency_M_Q_Y_A_deprecated(self, freq, freq_depr): + # GH#9586, GH#54275 + depr_msg = f"'{freq_depr[1:]}' is deprecated and will be removed " + f"in a future version, please use '{freq[1:]}' instead." + + expected = pd.date_range("1/1/2000", periods=4, freq=freq) + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + result = pd.date_range("1/1/2000", periods=4, freq=freq_depr) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("freq_depr", ["2H", "2CBH", "2MIN", "2S", "2mS", "2Us"]) + def test_date_range_uppercase_frequency_deprecated(self, freq_depr): + # GH#9586, GH#54939 + depr_msg = f"'{freq_depr[1:]}' is deprecated and will be removed in a " + f"future version. Please use '{freq_depr.lower()[1:]}' instead." + + expected = pd.date_range("1/1/2000", periods=4, freq=freq_depr.lower()) + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + result = pd.date_range("1/1/2000", periods=4, freq=freq_depr) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "freq_depr", + [ + "2ye-mar", + "2ys", + "2qe", + "2qs-feb", + "2bqs", + "2sms", + "2bms", + "2cbme", + "2me", + "2w", + ], + ) + def test_date_range_lowercase_frequency_deprecated(self, freq_depr): + # GH#9586, GH#54939 + depr_msg = f"'{freq_depr[1:]}' is deprecated and will be removed in a " + f"future version, please use '{freq_depr.upper()[1:]}' instead." + + expected = pd.date_range("1/1/2000", periods=4, freq=freq_depr.upper()) + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + result = pd.date_range("1/1/2000", periods=4, freq=freq_depr) + tm.assert_index_equal(result, expected) + + +def test_factorize_sort_without_freq(): + dta = DatetimeArray._from_sequence([0, 2, 1], dtype="M8[ns]") + + msg = r"call pd.factorize\(obj, sort=True\) instead" + with pytest.raises(NotImplementedError, match=msg): + dta.factorize(sort=True) + + # Do TimedeltaArray while we're here + tda = dta - dta[0] + with pytest.raises(NotImplementedError, match=msg): + tda.factorize(sort=True) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/test_ndarray_backed.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/test_ndarray_backed.py new file mode 100644 index 0000000000000000000000000000000000000000..1fe7cc9b03e8a6cef04558958ed949a0239a96cc --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/test_ndarray_backed.py @@ -0,0 +1,75 @@ +""" +Tests for subclasses of NDArrayBackedExtensionArray +""" +import numpy as np + +from pandas import ( + CategoricalIndex, + date_range, +) +from pandas.core.arrays import ( + Categorical, + DatetimeArray, + NumpyExtensionArray, + TimedeltaArray, +) + + +class TestEmpty: + def test_empty_categorical(self): + ci = CategoricalIndex(["a", "b", "c"], ordered=True) + dtype = ci.dtype + + # case with int8 codes + shape = (4,) + result = Categorical._empty(shape, dtype=dtype) + assert isinstance(result, Categorical) + assert result.shape == shape + assert result._ndarray.dtype == np.int8 + + # case where repr would segfault if we didn't override base implementation + result = Categorical._empty((4096,), dtype=dtype) + assert isinstance(result, Categorical) + assert result.shape == (4096,) + assert result._ndarray.dtype == np.int8 + repr(result) + + # case with int16 codes + ci = CategoricalIndex(list(range(512)) * 4, ordered=False) + dtype = ci.dtype + result = Categorical._empty(shape, dtype=dtype) + assert isinstance(result, Categorical) + assert result.shape == shape + assert result._ndarray.dtype == np.int16 + + def test_empty_dt64tz(self): + dti = date_range("2016-01-01", periods=2, tz="Asia/Tokyo") + dtype = dti.dtype + + shape = (0,) + result = DatetimeArray._empty(shape, dtype=dtype) + assert result.dtype == dtype + assert isinstance(result, DatetimeArray) + assert result.shape == shape + + def test_empty_dt64(self): + shape = (3, 9) + result = DatetimeArray._empty(shape, dtype="datetime64[ns]") + assert isinstance(result, DatetimeArray) + assert result.shape == shape + + def test_empty_td64(self): + shape = (3, 9) + result = TimedeltaArray._empty(shape, dtype="m8[ns]") + assert isinstance(result, TimedeltaArray) + assert result.shape == shape + + def test_empty_pandas_array(self): + arr = NumpyExtensionArray(np.array([1, 2])) + dtype = arr.dtype + + shape = (3, 9) + result = NumpyExtensionArray._empty(shape, dtype=dtype) + assert isinstance(result, NumpyExtensionArray) + assert result.dtype == dtype + assert result.shape == shape diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/test_period.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/test_period.py new file mode 100644 index 0000000000000000000000000000000000000000..48453ba19e9a1f6971a2e56872ec42f1856d1dd0 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/test_period.py @@ -0,0 +1,184 @@ +import numpy as np +import pytest + +from pandas._libs.tslibs import iNaT +from pandas._libs.tslibs.period import IncompatibleFrequency + +from pandas.core.dtypes.base import _registry as registry +from pandas.core.dtypes.dtypes import PeriodDtype + +import pandas as pd +import pandas._testing as tm +from pandas.core.arrays import PeriodArray + +# ---------------------------------------------------------------------------- +# Dtype + + +def test_registered(): + assert PeriodDtype in registry.dtypes + result = registry.find("Period[D]") + expected = PeriodDtype("D") + assert result == expected + + +# ---------------------------------------------------------------------------- +# period_array + + +def test_asi8(): + result = PeriodArray._from_sequence(["2000", "2001", None], dtype="period[D]").asi8 + expected = np.array([10957, 11323, iNaT]) + tm.assert_numpy_array_equal(result, expected) + + +def test_take_raises(): + arr = PeriodArray._from_sequence(["2000", "2001"], dtype="period[D]") + with pytest.raises(IncompatibleFrequency, match="freq"): + arr.take([0, -1], allow_fill=True, fill_value=pd.Period("2000", freq="W")) + + msg = "value should be a 'Period' or 'NaT'. Got 'str' instead" + with pytest.raises(TypeError, match=msg): + arr.take([0, -1], allow_fill=True, fill_value="foo") + + +def test_fillna_raises(): + arr = PeriodArray._from_sequence(["2000", "2001", "2002"], dtype="period[D]") + with pytest.raises(ValueError, match="Length"): + arr.fillna(arr[:2]) + + +def test_fillna_copies(): + arr = PeriodArray._from_sequence(["2000", "2001", "2002"], dtype="period[D]") + result = arr.fillna(pd.Period("2000", "D")) + assert result is not arr + + +# ---------------------------------------------------------------------------- +# setitem + + +@pytest.mark.parametrize( + "key, value, expected", + [ + ([0], pd.Period("2000", "D"), [10957, 1, 2]), + ([0], None, [iNaT, 1, 2]), + ([0], np.nan, [iNaT, 1, 2]), + ([0, 1, 2], pd.Period("2000", "D"), [10957] * 3), + ( + [0, 1, 2], + [pd.Period("2000", "D"), pd.Period("2001", "D"), pd.Period("2002", "D")], + [10957, 11323, 11688], + ), + ], +) +def test_setitem(key, value, expected): + arr = PeriodArray(np.arange(3), dtype="period[D]") + expected = PeriodArray(expected, dtype="period[D]") + arr[key] = value + tm.assert_period_array_equal(arr, expected) + + +def test_setitem_raises_incompatible_freq(): + arr = PeriodArray(np.arange(3), dtype="period[D]") + with pytest.raises(IncompatibleFrequency, match="freq"): + arr[0] = pd.Period("2000", freq="Y") + + other = PeriodArray._from_sequence(["2000", "2001"], dtype="period[Y]") + with pytest.raises(IncompatibleFrequency, match="freq"): + arr[[0, 1]] = other + + +def test_setitem_raises_length(): + arr = PeriodArray(np.arange(3), dtype="period[D]") + with pytest.raises(ValueError, match="length"): + arr[[0, 1]] = [pd.Period("2000", freq="D")] + + +def test_setitem_raises_type(): + arr = PeriodArray(np.arange(3), dtype="period[D]") + with pytest.raises(TypeError, match="int"): + arr[0] = 1 + + +# ---------------------------------------------------------------------------- +# Ops + + +def test_sub_period(): + arr = PeriodArray._from_sequence(["2000", "2001"], dtype="period[D]") + other = pd.Period("2000", freq="M") + with pytest.raises(IncompatibleFrequency, match="freq"): + arr - other + + +def test_sub_period_overflow(): + # GH#47538 + dti = pd.date_range("1677-09-22", periods=2, freq="D") + pi = dti.to_period("ns") + + per = pd.Period._from_ordinal(10**14, pi.freq) + + with pytest.raises(OverflowError, match="Overflow in int64 addition"): + pi - per + + with pytest.raises(OverflowError, match="Overflow in int64 addition"): + per - pi + + +# ---------------------------------------------------------------------------- +# Methods + + +@pytest.mark.parametrize( + "other", + [ + pd.Period("2000", freq="h"), + PeriodArray._from_sequence(["2000", "2001", "2000"], dtype="period[h]"), + ], +) +def test_where_different_freq_raises(other): + # GH#45768 The PeriodArray method raises, the Series method coerces + ser = pd.Series( + PeriodArray._from_sequence(["2000", "2001", "2002"], dtype="period[D]") + ) + cond = np.array([True, False, True]) + + with pytest.raises(IncompatibleFrequency, match="freq"): + ser.array._where(cond, other) + + res = ser.where(cond, other) + expected = ser.astype(object).where(cond, other) + tm.assert_series_equal(res, expected) + + +# ---------------------------------------------------------------------------- +# Printing + + +def test_repr_small(): + arr = PeriodArray._from_sequence(["2000", "2001"], dtype="period[D]") + result = str(arr) + expected = ( + "\n['2000-01-01', '2001-01-01']\nLength: 2, dtype: period[D]" + ) + assert result == expected + + +def test_repr_large(): + arr = PeriodArray._from_sequence(["2000", "2001"] * 500, dtype="period[D]") + result = str(arr) + expected = ( + "\n" + "['2000-01-01', '2001-01-01', '2000-01-01', '2001-01-01', " + "'2000-01-01',\n" + " '2001-01-01', '2000-01-01', '2001-01-01', '2000-01-01', " + "'2001-01-01',\n" + " ...\n" + " '2000-01-01', '2001-01-01', '2000-01-01', '2001-01-01', " + "'2000-01-01',\n" + " '2001-01-01', '2000-01-01', '2001-01-01', '2000-01-01', " + "'2001-01-01']\n" + "Length: 1000, dtype: period[D]" + ) + assert result == expected diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/test_timedeltas.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/test_timedeltas.py new file mode 100644 index 0000000000000000000000000000000000000000..a3f15467feb144ee21883a0a2a777e3b5e0cdf42 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/test_timedeltas.py @@ -0,0 +1,313 @@ +from datetime import timedelta + +import numpy as np +import pytest + +import pandas as pd +from pandas import Timedelta +import pandas._testing as tm +from pandas.core.arrays import ( + DatetimeArray, + TimedeltaArray, +) + + +class TestNonNano: + @pytest.fixture(params=["s", "ms", "us"]) + def unit(self, request): + return request.param + + @pytest.fixture + def tda(self, unit): + arr = np.arange(5, dtype=np.int64).view(f"m8[{unit}]") + return TimedeltaArray._simple_new(arr, dtype=arr.dtype) + + def test_non_nano(self, unit): + arr = np.arange(5, dtype=np.int64).view(f"m8[{unit}]") + tda = TimedeltaArray._simple_new(arr, dtype=arr.dtype) + + assert tda.dtype == arr.dtype + assert tda[0].unit == unit + + def test_as_unit_raises(self, tda): + # GH#50616 + with pytest.raises(ValueError, match="Supported units"): + tda.as_unit("D") + + tdi = pd.Index(tda) + with pytest.raises(ValueError, match="Supported units"): + tdi.as_unit("D") + + @pytest.mark.parametrize("field", TimedeltaArray._field_ops) + def test_fields(self, tda, field): + as_nano = tda._ndarray.astype("m8[ns]") + tda_nano = TimedeltaArray._simple_new(as_nano, dtype=as_nano.dtype) + + result = getattr(tda, field) + expected = getattr(tda_nano, field) + tm.assert_numpy_array_equal(result, expected) + + def test_to_pytimedelta(self, tda): + as_nano = tda._ndarray.astype("m8[ns]") + tda_nano = TimedeltaArray._simple_new(as_nano, dtype=as_nano.dtype) + + result = tda.to_pytimedelta() + expected = tda_nano.to_pytimedelta() + tm.assert_numpy_array_equal(result, expected) + + def test_total_seconds(self, unit, tda): + as_nano = tda._ndarray.astype("m8[ns]") + tda_nano = TimedeltaArray._simple_new(as_nano, dtype=as_nano.dtype) + + result = tda.total_seconds() + expected = tda_nano.total_seconds() + tm.assert_numpy_array_equal(result, expected) + + def test_timedelta_array_total_seconds(self): + # GH34290 + expected = Timedelta("2 min").total_seconds() + + result = pd.array([Timedelta("2 min")]).total_seconds()[0] + assert result == expected + + def test_total_seconds_nanoseconds(self): + # issue #48521 + start_time = pd.Series(["2145-11-02 06:00:00"]).astype("datetime64[ns]") + end_time = pd.Series(["2145-11-02 07:06:00"]).astype("datetime64[ns]") + expected = (end_time - start_time).values / np.timedelta64(1, "s") + result = (end_time - start_time).dt.total_seconds().values + assert result == expected + + @pytest.mark.parametrize( + "nat", [np.datetime64("NaT", "ns"), np.datetime64("NaT", "us")] + ) + def test_add_nat_datetimelike_scalar(self, nat, tda): + result = tda + nat + assert isinstance(result, DatetimeArray) + assert result._creso == tda._creso + assert result.isna().all() + + result = nat + tda + assert isinstance(result, DatetimeArray) + assert result._creso == tda._creso + assert result.isna().all() + + def test_add_pdnat(self, tda): + result = tda + pd.NaT + assert isinstance(result, TimedeltaArray) + assert result._creso == tda._creso + assert result.isna().all() + + result = pd.NaT + tda + assert isinstance(result, TimedeltaArray) + assert result._creso == tda._creso + assert result.isna().all() + + # TODO: 2022-07-11 this is the only test that gets to DTA.tz_convert + # or tz_localize with non-nano; implement tests specific to that. + def test_add_datetimelike_scalar(self, tda, tz_naive_fixture): + ts = pd.Timestamp("2016-01-01", tz=tz_naive_fixture).as_unit("ns") + + expected = tda.as_unit("ns") + ts + res = tda + ts + tm.assert_extension_array_equal(res, expected) + res = ts + tda + tm.assert_extension_array_equal(res, expected) + + ts += Timedelta(1) # case where we can't cast losslessly + + exp_values = tda._ndarray + ts.asm8 + expected = ( + DatetimeArray._simple_new(exp_values, dtype=exp_values.dtype) + .tz_localize("UTC") + .tz_convert(ts.tz) + ) + + result = tda + ts + tm.assert_extension_array_equal(result, expected) + + result = ts + tda + tm.assert_extension_array_equal(result, expected) + + def test_mul_scalar(self, tda): + other = 2 + result = tda * other + expected = TimedeltaArray._simple_new(tda._ndarray * other, dtype=tda.dtype) + tm.assert_extension_array_equal(result, expected) + assert result._creso == tda._creso + + def test_mul_listlike(self, tda): + other = np.arange(len(tda)) + result = tda * other + expected = TimedeltaArray._simple_new(tda._ndarray * other, dtype=tda.dtype) + tm.assert_extension_array_equal(result, expected) + assert result._creso == tda._creso + + def test_mul_listlike_object(self, tda): + other = np.arange(len(tda)) + result = tda * other.astype(object) + expected = TimedeltaArray._simple_new(tda._ndarray * other, dtype=tda.dtype) + tm.assert_extension_array_equal(result, expected) + assert result._creso == tda._creso + + def test_div_numeric_scalar(self, tda): + other = 2 + result = tda / other + expected = TimedeltaArray._simple_new(tda._ndarray / other, dtype=tda.dtype) + tm.assert_extension_array_equal(result, expected) + assert result._creso == tda._creso + + def test_div_td_scalar(self, tda): + other = timedelta(seconds=1) + result = tda / other + expected = tda._ndarray / np.timedelta64(1, "s") + tm.assert_numpy_array_equal(result, expected) + + def test_div_numeric_array(self, tda): + other = np.arange(len(tda)) + result = tda / other + expected = TimedeltaArray._simple_new(tda._ndarray / other, dtype=tda.dtype) + tm.assert_extension_array_equal(result, expected) + assert result._creso == tda._creso + + def test_div_td_array(self, tda): + other = tda._ndarray + tda._ndarray[-1] + result = tda / other + expected = tda._ndarray / other + tm.assert_numpy_array_equal(result, expected) + + def test_add_timedeltaarraylike(self, tda): + tda_nano = tda.astype("m8[ns]") + + expected = tda_nano * 2 + res = tda_nano + tda + tm.assert_extension_array_equal(res, expected) + res = tda + tda_nano + tm.assert_extension_array_equal(res, expected) + + expected = tda_nano * 0 + res = tda - tda_nano + tm.assert_extension_array_equal(res, expected) + + res = tda_nano - tda + tm.assert_extension_array_equal(res, expected) + + +class TestTimedeltaArray: + @pytest.mark.parametrize("dtype", [int, np.int32, np.int64, "uint32", "uint64"]) + def test_astype_int(self, dtype): + arr = TimedeltaArray._from_sequence( + [Timedelta("1h"), Timedelta("2h")], dtype="m8[ns]" + ) + + if np.dtype(dtype) != np.int64: + with pytest.raises(TypeError, match=r"Do obj.astype\('int64'\)"): + arr.astype(dtype) + return + + result = arr.astype(dtype) + expected = arr._ndarray.view("i8") + tm.assert_numpy_array_equal(result, expected) + + def test_setitem_clears_freq(self): + a = pd.timedelta_range("1h", periods=2, freq="h")._data + a[0] = Timedelta("1h") + assert a.freq is None + + @pytest.mark.parametrize( + "obj", + [ + Timedelta(seconds=1), + Timedelta(seconds=1).to_timedelta64(), + Timedelta(seconds=1).to_pytimedelta(), + ], + ) + def test_setitem_objects(self, obj): + # make sure we accept timedelta64 and timedelta in addition to Timedelta + tdi = pd.timedelta_range("2 Days", periods=4, freq="h") + arr = tdi._data + + arr[0] = obj + assert arr[0] == Timedelta(seconds=1) + + @pytest.mark.parametrize( + "other", + [ + 1, + np.int64(1), + 1.0, + np.datetime64("NaT"), + pd.Timestamp("2021-01-01"), + "invalid", + np.arange(10, dtype="i8") * 24 * 3600 * 10**9, + (np.arange(10) * 24 * 3600 * 10**9).view("datetime64[ns]"), + pd.Timestamp("2021-01-01").to_period("D"), + ], + ) + @pytest.mark.parametrize("index", [True, False]) + def test_searchsorted_invalid_types(self, other, index): + data = np.arange(10, dtype="i8") * 24 * 3600 * 10**9 + arr = pd.TimedeltaIndex(data, freq="D")._data + if index: + arr = pd.Index(arr) + + msg = "|".join( + [ + "searchsorted requires compatible dtype or scalar", + "value should be a 'Timedelta', 'NaT', or array of those. Got", + ] + ) + with pytest.raises(TypeError, match=msg): + arr.searchsorted(other) + + +class TestUnaryOps: + def test_abs(self): + vals = np.array([-3600 * 10**9, "NaT", 7200 * 10**9], dtype="m8[ns]") + arr = TimedeltaArray._from_sequence(vals) + + evals = np.array([3600 * 10**9, "NaT", 7200 * 10**9], dtype="m8[ns]") + expected = TimedeltaArray._from_sequence(evals) + + result = abs(arr) + tm.assert_timedelta_array_equal(result, expected) + + result2 = np.abs(arr) + tm.assert_timedelta_array_equal(result2, expected) + + def test_pos(self): + vals = np.array([-3600 * 10**9, "NaT", 7200 * 10**9], dtype="m8[ns]") + arr = TimedeltaArray._from_sequence(vals) + + result = +arr + tm.assert_timedelta_array_equal(result, arr) + assert not tm.shares_memory(result, arr) + + result2 = np.positive(arr) + tm.assert_timedelta_array_equal(result2, arr) + assert not tm.shares_memory(result2, arr) + + def test_neg(self): + vals = np.array([-3600 * 10**9, "NaT", 7200 * 10**9], dtype="m8[ns]") + arr = TimedeltaArray._from_sequence(vals) + + evals = np.array([3600 * 10**9, "NaT", -7200 * 10**9], dtype="m8[ns]") + expected = TimedeltaArray._from_sequence(evals) + + result = -arr + tm.assert_timedelta_array_equal(result, expected) + + result2 = np.negative(arr) + tm.assert_timedelta_array_equal(result2, expected) + + def test_neg_freq(self): + tdi = pd.timedelta_range("2 Days", periods=4, freq="h") + arr = tdi._data + + expected = -tdi._data + + result = -arr + tm.assert_timedelta_array_equal(result, expected) + + result2 = np.negative(arr) + tm.assert_timedelta_array_equal(result2, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/timedeltas/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/timedeltas/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/timedeltas/test_constructors.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/timedeltas/test_constructors.py new file mode 100644 index 0000000000000000000000000000000000000000..91b6f7fa222f9a668092a99a8371753e914008c8 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/timedeltas/test_constructors.py @@ -0,0 +1,103 @@ +import numpy as np +import pytest + +import pandas._testing as tm +from pandas.core.arrays import TimedeltaArray + + +class TestTimedeltaArrayConstructor: + def test_only_1dim_accepted(self): + # GH#25282 + arr = np.array([0, 1, 2, 3], dtype="m8[h]").astype("m8[ns]") + + depr_msg = "TimedeltaArray.__init__ is deprecated" + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + with pytest.raises(ValueError, match="Only 1-dimensional"): + # 3-dim, we allow 2D to sneak in for ops purposes GH#29853 + TimedeltaArray(arr.reshape(2, 2, 1)) + + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + with pytest.raises(ValueError, match="Only 1-dimensional"): + # 0-dim + TimedeltaArray(arr[[0]].squeeze()) + + def test_freq_validation(self): + # ensure that the public constructor cannot create an invalid instance + arr = np.array([0, 0, 1], dtype=np.int64) * 3600 * 10**9 + + msg = ( + "Inferred frequency None from passed values does not " + "conform to passed frequency D" + ) + depr_msg = "TimedeltaArray.__init__ is deprecated" + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + with pytest.raises(ValueError, match=msg): + TimedeltaArray(arr.view("timedelta64[ns]"), freq="D") + + def test_non_array_raises(self): + depr_msg = "TimedeltaArray.__init__ is deprecated" + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + with pytest.raises(ValueError, match="list"): + TimedeltaArray([1, 2, 3]) + + def test_other_type_raises(self): + msg = r"dtype bool cannot be converted to timedelta64\[ns\]" + with pytest.raises(TypeError, match=msg): + TimedeltaArray._from_sequence(np.array([1, 2, 3], dtype="bool")) + + def test_incorrect_dtype_raises(self): + msg = "dtype 'category' is invalid, should be np.timedelta64 dtype" + with pytest.raises(ValueError, match=msg): + TimedeltaArray._from_sequence( + np.array([1, 2, 3], dtype="i8"), dtype="category" + ) + + msg = "dtype 'int64' is invalid, should be np.timedelta64 dtype" + with pytest.raises(ValueError, match=msg): + TimedeltaArray._from_sequence( + np.array([1, 2, 3], dtype="i8"), dtype=np.dtype("int64") + ) + + msg = r"dtype 'datetime64\[ns\]' is invalid, should be np.timedelta64 dtype" + with pytest.raises(ValueError, match=msg): + TimedeltaArray._from_sequence( + np.array([1, 2, 3], dtype="i8"), dtype=np.dtype("M8[ns]") + ) + + msg = ( + r"dtype 'datetime64\[us, UTC\]' is invalid, should be np.timedelta64 dtype" + ) + with pytest.raises(ValueError, match=msg): + TimedeltaArray._from_sequence( + np.array([1, 2, 3], dtype="i8"), dtype="M8[us, UTC]" + ) + + msg = "Supported timedelta64 resolutions are 's', 'ms', 'us', 'ns'" + with pytest.raises(ValueError, match=msg): + TimedeltaArray._from_sequence( + np.array([1, 2, 3], dtype="i8"), dtype=np.dtype("m8[Y]") + ) + + def test_mismatched_values_dtype_units(self): + arr = np.array([1, 2, 3], dtype="m8[s]") + dtype = np.dtype("m8[ns]") + msg = r"Values resolution does not match dtype" + depr_msg = "TimedeltaArray.__init__ is deprecated" + + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + with pytest.raises(ValueError, match=msg): + TimedeltaArray(arr, dtype=dtype) + + def test_copy(self): + data = np.array([1, 2, 3], dtype="m8[ns]") + arr = TimedeltaArray._from_sequence(data, copy=False) + assert arr._ndarray is data + + arr = TimedeltaArray._from_sequence(data, copy=True) + assert arr._ndarray is not data + assert arr._ndarray.base is not data + + def test_from_sequence_dtype(self): + msg = "dtype 'object' is invalid, should be np.timedelta64 dtype" + with pytest.raises(ValueError, match=msg): + TimedeltaArray._from_sequence([], dtype=object) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/timedeltas/test_cumulative.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/timedeltas/test_cumulative.py new file mode 100644 index 0000000000000000000000000000000000000000..2d8fe65f807e431d788e526eee058780b5bf979c --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/timedeltas/test_cumulative.py @@ -0,0 +1,20 @@ +import pytest + +import pandas._testing as tm +from pandas.core.arrays import TimedeltaArray + + +class TestAccumulator: + def test_accumulators_disallowed(self): + # GH#50297 + arr = TimedeltaArray._from_sequence(["1D", "2D"], dtype="m8[ns]") + with pytest.raises(TypeError, match="cumprod not supported"): + arr._accumulate("cumprod") + + def test_cumsum(self, unit): + # GH#50297 + dtype = f"m8[{unit}]" + arr = TimedeltaArray._from_sequence(["1D", "2D"], dtype=dtype) + result = arr._accumulate("cumsum") + expected = TimedeltaArray._from_sequence(["1D", "3D"], dtype=dtype) + tm.assert_timedelta_array_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/timedeltas/test_reductions.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/timedeltas/test_reductions.py new file mode 100644 index 0000000000000000000000000000000000000000..991dbf41c808794f9a53a3f3351a9b6e79a7c6fd --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/arrays/timedeltas/test_reductions.py @@ -0,0 +1,218 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import Timedelta +import pandas._testing as tm +from pandas.core import nanops +from pandas.core.arrays import TimedeltaArray + + +class TestReductions: + @pytest.mark.parametrize("name", ["std", "min", "max", "median", "mean"]) + @pytest.mark.parametrize("skipna", [True, False]) + def test_reductions_empty(self, name, skipna): + tdi = pd.TimedeltaIndex([]) + arr = tdi.array + + result = getattr(tdi, name)(skipna=skipna) + assert result is pd.NaT + + result = getattr(arr, name)(skipna=skipna) + assert result is pd.NaT + + @pytest.mark.parametrize("skipna", [True, False]) + def test_sum_empty(self, skipna): + tdi = pd.TimedeltaIndex([]) + arr = tdi.array + + result = tdi.sum(skipna=skipna) + assert isinstance(result, Timedelta) + assert result == Timedelta(0) + + result = arr.sum(skipna=skipna) + assert isinstance(result, Timedelta) + assert result == Timedelta(0) + + def test_min_max(self, unit): + dtype = f"m8[{unit}]" + arr = TimedeltaArray._from_sequence( + ["3h", "3h", "NaT", "2h", "5h", "4h"], dtype=dtype + ) + + result = arr.min() + expected = Timedelta("2h") + assert result == expected + + result = arr.max() + expected = Timedelta("5h") + assert result == expected + + result = arr.min(skipna=False) + assert result is pd.NaT + + result = arr.max(skipna=False) + assert result is pd.NaT + + def test_sum(self): + tdi = pd.TimedeltaIndex(["3h", "3h", "NaT", "2h", "5h", "4h"]) + arr = tdi.array + + result = arr.sum(skipna=True) + expected = Timedelta(hours=17) + assert isinstance(result, Timedelta) + assert result == expected + + result = tdi.sum(skipna=True) + assert isinstance(result, Timedelta) + assert result == expected + + result = arr.sum(skipna=False) + assert result is pd.NaT + + result = tdi.sum(skipna=False) + assert result is pd.NaT + + result = arr.sum(min_count=9) + assert result is pd.NaT + + result = tdi.sum(min_count=9) + assert result is pd.NaT + + result = arr.sum(min_count=1) + assert isinstance(result, Timedelta) + assert result == expected + + result = tdi.sum(min_count=1) + assert isinstance(result, Timedelta) + assert result == expected + + def test_npsum(self): + # GH#25282, GH#25335 np.sum should return a Timedelta, not timedelta64 + tdi = pd.TimedeltaIndex(["3h", "3h", "2h", "5h", "4h"]) + arr = tdi.array + + result = np.sum(tdi) + expected = Timedelta(hours=17) + assert isinstance(result, Timedelta) + assert result == expected + + result = np.sum(arr) + assert isinstance(result, Timedelta) + assert result == expected + + def test_sum_2d_skipna_false(self): + arr = np.arange(8).astype(np.int64).view("m8[s]").astype("m8[ns]").reshape(4, 2) + arr[-1, -1] = "Nat" + + tda = TimedeltaArray._from_sequence(arr) + + result = tda.sum(skipna=False) + assert result is pd.NaT + + result = tda.sum(axis=0, skipna=False) + expected = pd.TimedeltaIndex([Timedelta(seconds=12), pd.NaT])._values + tm.assert_timedelta_array_equal(result, expected) + + result = tda.sum(axis=1, skipna=False) + expected = pd.TimedeltaIndex( + [ + Timedelta(seconds=1), + Timedelta(seconds=5), + Timedelta(seconds=9), + pd.NaT, + ] + )._values + tm.assert_timedelta_array_equal(result, expected) + + # Adding a Timestamp makes this a test for DatetimeArray.std + @pytest.mark.parametrize( + "add", + [ + Timedelta(0), + pd.Timestamp("2021-01-01"), + pd.Timestamp("2021-01-01", tz="UTC"), + pd.Timestamp("2021-01-01", tz="Asia/Tokyo"), + ], + ) + def test_std(self, add): + tdi = pd.TimedeltaIndex(["0h", "4h", "NaT", "4h", "0h", "2h"]) + add + arr = tdi.array + + result = arr.std(skipna=True) + expected = Timedelta(hours=2) + assert isinstance(result, Timedelta) + assert result == expected + + result = tdi.std(skipna=True) + assert isinstance(result, Timedelta) + assert result == expected + + if getattr(arr, "tz", None) is None: + result = nanops.nanstd(np.asarray(arr), skipna=True) + assert isinstance(result, np.timedelta64) + assert result == expected + + result = arr.std(skipna=False) + assert result is pd.NaT + + result = tdi.std(skipna=False) + assert result is pd.NaT + + if getattr(arr, "tz", None) is None: + result = nanops.nanstd(np.asarray(arr), skipna=False) + assert isinstance(result, np.timedelta64) + assert np.isnat(result) + + def test_median(self): + tdi = pd.TimedeltaIndex(["0h", "3h", "NaT", "5h06m", "0h", "2h"]) + arr = tdi.array + + result = arr.median(skipna=True) + expected = Timedelta(hours=2) + assert isinstance(result, Timedelta) + assert result == expected + + result = tdi.median(skipna=True) + assert isinstance(result, Timedelta) + assert result == expected + + result = arr.median(skipna=False) + assert result is pd.NaT + + result = tdi.median(skipna=False) + assert result is pd.NaT + + def test_mean(self): + tdi = pd.TimedeltaIndex(["0h", "3h", "NaT", "5h06m", "0h", "2h"]) + arr = tdi._data + + # manually verified result + expected = Timedelta(arr.dropna()._ndarray.mean()) + + result = arr.mean() + assert result == expected + result = arr.mean(skipna=False) + assert result is pd.NaT + + result = arr.dropna().mean(skipna=False) + assert result == expected + + result = arr.mean(axis=0) + assert result == expected + + def test_mean_2d(self): + tdi = pd.timedelta_range("14 days", periods=6) + tda = tdi._data.reshape(3, 2) + + result = tda.mean(axis=0) + expected = tda[1] + tm.assert_timedelta_array_equal(result, expected) + + result = tda.mean(axis=1) + expected = tda[:, 0] + Timedelta(hours=12) + tm.assert_timedelta_array_equal(result, expected) + + result = tda.mean(axis=None) + expected = tdi.mean() + assert result == expected diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/base/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/base/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/base/common.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/base/common.py new file mode 100644 index 0000000000000000000000000000000000000000..ad0b394105742ca5de92a03a3da2c569c38da469 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/base/common.py @@ -0,0 +1,9 @@ +from typing import Any + +from pandas import Index + + +def allow_na_ops(obj: Any) -> bool: + """Whether to skip test cases including NaN""" + is_bool_index = isinstance(obj, Index) and obj.inferred_type == "boolean" + return not is_bool_index and obj._can_hold_na diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/base/test_constructors.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/base/test_constructors.py new file mode 100644 index 0000000000000000000000000000000000000000..3434c8110a79c3de126463651eecb93990f65c7c --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/base/test_constructors.py @@ -0,0 +1,190 @@ +from datetime import datetime +import sys + +import numpy as np +import pytest + +from pandas.compat import PYPY + +import pandas as pd +from pandas import ( + DataFrame, + Index, + Series, +) +import pandas._testing as tm +from pandas.core.accessor import PandasDelegate +from pandas.core.base import ( + NoNewAttributesMixin, + PandasObject, +) + + +def series_via_frame_from_dict(x, **kwargs): + return DataFrame({"a": x}, **kwargs)["a"] + + +def series_via_frame_from_scalar(x, **kwargs): + return DataFrame(x, **kwargs)[0] + + +@pytest.fixture( + params=[ + Series, + series_via_frame_from_dict, + series_via_frame_from_scalar, + Index, + ], + ids=["Series", "DataFrame-dict", "DataFrame-array", "Index"], +) +def constructor(request): + return request.param + + +class TestPandasDelegate: + class Delegator: + _properties = ["prop"] + _methods = ["test_method"] + + def _set_prop(self, value): + self.prop = value + + def _get_prop(self): + return self.prop + + prop = property(_get_prop, _set_prop, doc="foo property") + + def test_method(self, *args, **kwargs): + """a test method""" + + class Delegate(PandasDelegate, PandasObject): + def __init__(self, obj) -> None: + self.obj = obj + + def test_invalid_delegation(self): + # these show that in order for the delegation to work + # the _delegate_* methods need to be overridden to not raise + # a TypeError + + self.Delegate._add_delegate_accessors( + delegate=self.Delegator, + accessors=self.Delegator._properties, + typ="property", + ) + self.Delegate._add_delegate_accessors( + delegate=self.Delegator, accessors=self.Delegator._methods, typ="method" + ) + + delegate = self.Delegate(self.Delegator()) + + msg = "You cannot access the property prop" + with pytest.raises(TypeError, match=msg): + delegate.prop + + msg = "The property prop cannot be set" + with pytest.raises(TypeError, match=msg): + delegate.prop = 5 + + msg = "You cannot access the property prop" + with pytest.raises(TypeError, match=msg): + delegate.prop + + @pytest.mark.skipif(PYPY, reason="not relevant for PyPy") + def test_memory_usage(self): + # Delegate does not implement memory_usage. + # Check that we fall back to in-built `__sizeof__` + # GH 12924 + delegate = self.Delegate(self.Delegator()) + sys.getsizeof(delegate) + + +class TestNoNewAttributesMixin: + def test_mixin(self): + class T(NoNewAttributesMixin): + pass + + t = T() + assert not hasattr(t, "__frozen") + + t.a = "test" + assert t.a == "test" + + t._freeze() + assert "__frozen" in dir(t) + assert getattr(t, "__frozen") + msg = "You cannot add any new attribute" + with pytest.raises(AttributeError, match=msg): + t.b = "test" + + assert not hasattr(t, "b") + + +class TestConstruction: + # test certain constructor behaviours on dtype inference across Series, + # Index and DataFrame + + @pytest.mark.parametrize( + "a", + [ + np.array(["2263-01-01"], dtype="datetime64[D]"), + np.array([datetime(2263, 1, 1)], dtype=object), + np.array([np.datetime64("2263-01-01", "D")], dtype=object), + np.array(["2263-01-01"], dtype=object), + ], + ids=[ + "datetime64[D]", + "object-datetime.datetime", + "object-numpy-scalar", + "object-string", + ], + ) + def test_constructor_datetime_outofbound( + self, a, constructor, request, using_infer_string + ): + # GH-26853 (+ bug GH-26206 out of bound non-ns unit) + + # No dtype specified (dtype inference) + # datetime64[non-ns] raise error, other cases result in object dtype + # and preserve original data + if a.dtype.kind == "M": + # Can't fit in nanosecond bounds -> get the nearest supported unit + result = constructor(a) + assert result.dtype == "M8[s]" + else: + result = constructor(a) + if using_infer_string and "object-string" in request.node.callspec.id: + assert result.dtype == "string" + else: + assert result.dtype == "object" + tm.assert_numpy_array_equal(result.to_numpy(), a) + + # Explicit dtype specified + # Forced conversion fails for all -> all cases raise error + msg = "Out of bounds|Out of bounds .* present at position 0" + with pytest.raises(pd.errors.OutOfBoundsDatetime, match=msg): + constructor(a, dtype="datetime64[ns]") + + def test_constructor_datetime_nonns(self, constructor): + arr = np.array(["2020-01-01T00:00:00.000000"], dtype="datetime64[us]") + dta = pd.core.arrays.DatetimeArray._simple_new(arr, dtype=arr.dtype) + expected = constructor(dta) + assert expected.dtype == arr.dtype + + result = constructor(arr) + tm.assert_equal(result, expected) + + # https://github.com/pandas-dev/pandas/issues/34843 + arr.flags.writeable = False + result = constructor(arr) + tm.assert_equal(result, expected) + + def test_constructor_from_dict_keys(self, constructor, using_infer_string): + # https://github.com/pandas-dev/pandas/issues/60343 + d = {"a": 1, "b": 2} + result = constructor(d.keys(), dtype="str") + if using_infer_string: + assert result.dtype == "str" + else: + assert result.dtype == "object" + expected = constructor(list(d.keys()), dtype="str") + tm.assert_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/base/test_conversion.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/base/test_conversion.py new file mode 100644 index 0000000000000000000000000000000000000000..4d0e2d1ce0e07ecb100870ffa784d3ecc54e0f37 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/base/test_conversion.py @@ -0,0 +1,596 @@ +import numpy as np +import pytest + +from pandas.compat import HAS_PYARROW +from pandas.compat.numpy import np_version_gt2 + +from pandas.core.dtypes.dtypes import DatetimeTZDtype + +import pandas as pd +from pandas import ( + CategoricalIndex, + Series, + Timedelta, + Timestamp, + date_range, +) +import pandas._testing as tm +from pandas.core.arrays import ( + DatetimeArray, + IntervalArray, + NumpyExtensionArray, + PeriodArray, + SparseArray, + TimedeltaArray, +) +from pandas.core.arrays.string_ import StringArrayNumpySemantics +from pandas.core.arrays.string_arrow import ArrowStringArrayNumpySemantics + + +class TestToIterable: + # test that we convert an iterable to python types + + dtypes = [ + ("int8", int), + ("int16", int), + ("int32", int), + ("int64", int), + ("uint8", int), + ("uint16", int), + ("uint32", int), + ("uint64", int), + ("float16", float), + ("float32", float), + ("float64", float), + ("datetime64[ns]", Timestamp), + ("datetime64[ns, US/Eastern]", Timestamp), + ("timedelta64[ns]", Timedelta), + ] + + @pytest.mark.parametrize("dtype, rdtype", dtypes) + @pytest.mark.parametrize( + "method", + [ + lambda x: x.tolist(), + lambda x: x.to_list(), + lambda x: list(x), + lambda x: list(x.__iter__()), + ], + ids=["tolist", "to_list", "list", "iter"], + ) + def test_iterable(self, index_or_series, method, dtype, rdtype): + # gh-10904 + # gh-13258 + # coerce iteration to underlying python / pandas types + typ = index_or_series + if dtype == "float16" and issubclass(typ, pd.Index): + with pytest.raises(NotImplementedError, match="float16 indexes are not "): + typ([1], dtype=dtype) + return + s = typ([1], dtype=dtype) + result = method(s)[0] + assert isinstance(result, rdtype) + + @pytest.mark.parametrize( + "dtype, rdtype, obj", + [ + ("object", object, "a"), + ("object", int, 1), + ("category", object, "a"), + ("category", int, 1), + ], + ) + @pytest.mark.parametrize( + "method", + [ + lambda x: x.tolist(), + lambda x: x.to_list(), + lambda x: list(x), + lambda x: list(x.__iter__()), + ], + ids=["tolist", "to_list", "list", "iter"], + ) + def test_iterable_object_and_category( + self, index_or_series, method, dtype, rdtype, obj + ): + # gh-10904 + # gh-13258 + # coerce iteration to underlying python / pandas types + typ = index_or_series + s = typ([obj], dtype=dtype) + result = method(s)[0] + assert isinstance(result, rdtype) + + @pytest.mark.parametrize("dtype, rdtype", dtypes) + def test_iterable_items(self, dtype, rdtype): + # gh-13258 + # test if items yields the correct boxed scalars + # this only applies to series + s = Series([1], dtype=dtype) + _, result = next(iter(s.items())) + assert isinstance(result, rdtype) + + _, result = next(iter(s.items())) + assert isinstance(result, rdtype) + + @pytest.mark.parametrize( + "dtype, rdtype", dtypes + [("object", int), ("category", int)] + ) + def test_iterable_map(self, index_or_series, dtype, rdtype): + # gh-13236 + # coerce iteration to underlying python / pandas types + typ = index_or_series + if dtype == "float16" and issubclass(typ, pd.Index): + with pytest.raises(NotImplementedError, match="float16 indexes are not "): + typ([1], dtype=dtype) + return + s = typ([1], dtype=dtype) + result = s.map(type)[0] + if not isinstance(rdtype, tuple): + rdtype = (rdtype,) + assert result in rdtype + + @pytest.mark.parametrize( + "method", + [ + lambda x: x.tolist(), + lambda x: x.to_list(), + lambda x: list(x), + lambda x: list(x.__iter__()), + ], + ids=["tolist", "to_list", "list", "iter"], + ) + def test_categorial_datetimelike(self, method): + i = CategoricalIndex([Timestamp("1999-12-31"), Timestamp("2000-12-31")]) + + result = method(i)[0] + assert isinstance(result, Timestamp) + + def test_iter_box_dt64(self, unit): + vals = [Timestamp("2011-01-01"), Timestamp("2011-01-02")] + ser = Series(vals).dt.as_unit(unit) + assert ser.dtype == f"datetime64[{unit}]" + for res, exp in zip(ser, vals): + assert isinstance(res, Timestamp) + assert res.tz is None + assert res == exp + assert res.unit == unit + + def test_iter_box_dt64tz(self, unit): + vals = [ + Timestamp("2011-01-01", tz="US/Eastern"), + Timestamp("2011-01-02", tz="US/Eastern"), + ] + ser = Series(vals).dt.as_unit(unit) + + assert ser.dtype == f"datetime64[{unit}, US/Eastern]" + for res, exp in zip(ser, vals): + assert isinstance(res, Timestamp) + assert res.tz == exp.tz + assert res == exp + assert res.unit == unit + + def test_iter_box_timedelta64(self, unit): + # timedelta + vals = [Timedelta("1 days"), Timedelta("2 days")] + ser = Series(vals).dt.as_unit(unit) + assert ser.dtype == f"timedelta64[{unit}]" + for res, exp in zip(ser, vals): + assert isinstance(res, Timedelta) + assert res == exp + assert res.unit == unit + + def test_iter_box_period(self): + # period + vals = [pd.Period("2011-01-01", freq="M"), pd.Period("2011-01-02", freq="M")] + s = Series(vals) + assert s.dtype == "Period[M]" + for res, exp in zip(s, vals): + assert isinstance(res, pd.Period) + assert res.freq == "ME" + assert res == exp + + +@pytest.mark.parametrize( + "arr, expected_type, dtype", + [ + (np.array([0, 1], dtype=np.int64), np.ndarray, "int64"), + (np.array(["a", "b"]), np.ndarray, "object"), + (pd.Categorical(["a", "b"]), pd.Categorical, "category"), + ( + pd.DatetimeIndex(["2017", "2018"], tz="US/Central"), + DatetimeArray, + "datetime64[ns, US/Central]", + ), + ( + pd.PeriodIndex([2018, 2019], freq="Y"), + PeriodArray, + pd.core.dtypes.dtypes.PeriodDtype("Y-DEC"), + ), + (pd.IntervalIndex.from_breaks([0, 1, 2]), IntervalArray, "interval"), + ( + pd.DatetimeIndex(["2017", "2018"]), + DatetimeArray, + "datetime64[ns]", + ), + ( + pd.TimedeltaIndex([10**10]), + TimedeltaArray, + "m8[ns]", + ), + ], +) +def test_values_consistent(arr, expected_type, dtype, using_infer_string): + if using_infer_string and dtype == "object": + expected_type = ( + ArrowStringArrayNumpySemantics if HAS_PYARROW else StringArrayNumpySemantics + ) + l_values = Series(arr)._values + r_values = pd.Index(arr)._values + assert type(l_values) is expected_type + assert type(l_values) is type(r_values) + + tm.assert_equal(l_values, r_values) + + +@pytest.mark.parametrize("arr", [np.array([1, 2, 3])]) +def test_numpy_array(arr): + ser = Series(arr) + result = ser.array + expected = NumpyExtensionArray(arr) + tm.assert_extension_array_equal(result, expected) + + +def test_numpy_array_all_dtypes(any_numpy_dtype): + ser = Series(dtype=any_numpy_dtype) + result = ser.array + if np.dtype(any_numpy_dtype).kind == "M": + assert isinstance(result, DatetimeArray) + elif np.dtype(any_numpy_dtype).kind == "m": + assert isinstance(result, TimedeltaArray) + else: + assert isinstance(result, NumpyExtensionArray) + + +@pytest.mark.parametrize( + "arr, attr", + [ + (pd.Categorical(["a", "b"]), "_codes"), + (PeriodArray._from_sequence(["2000", "2001"], dtype="period[D]"), "_ndarray"), + (pd.array([0, np.nan], dtype="Int64"), "_data"), + (IntervalArray.from_breaks([0, 1]), "_left"), + (SparseArray([0, 1]), "_sparse_values"), + ( + DatetimeArray._from_sequence(np.array([1, 2], dtype="datetime64[ns]")), + "_ndarray", + ), + # tz-aware Datetime + ( + DatetimeArray._from_sequence( + np.array( + ["2000-01-01T12:00:00", "2000-01-02T12:00:00"], dtype="M8[ns]" + ), + dtype=DatetimeTZDtype(tz="US/Central"), + ), + "_ndarray", + ), + ], +) +def test_array(arr, attr, index_or_series, request): + box = index_or_series + + result = box(arr, copy=False).array + + if attr: + arr = getattr(arr, attr) + result = getattr(result, attr) + + assert result is arr + + +def test_array_multiindex_raises(): + idx = pd.MultiIndex.from_product([["A"], ["a", "b"]]) + msg = "MultiIndex has no single backing array" + with pytest.raises(ValueError, match=msg): + idx.array + + +@pytest.mark.parametrize( + "arr, expected, zero_copy", + [ + (np.array([1, 2], dtype=np.int64), np.array([1, 2], dtype=np.int64), True), + (pd.Categorical(["a", "b"]), np.array(["a", "b"], dtype=object), False), + ( + pd.core.arrays.period_array(["2000", "2001"], freq="D"), + np.array([pd.Period("2000", freq="D"), pd.Period("2001", freq="D")]), + False, + ), + (pd.array([0, np.nan], dtype="Int64"), np.array([0, np.nan]), False), + ( + IntervalArray.from_breaks([0, 1, 2]), + np.array([pd.Interval(0, 1), pd.Interval(1, 2)], dtype=object), + False, + ), + (SparseArray([0, 1]), np.array([0, 1], dtype=np.int64), False), + # tz-naive datetime + ( + DatetimeArray._from_sequence(np.array(["2000", "2001"], dtype="M8[ns]")), + np.array(["2000", "2001"], dtype="M8[ns]"), + True, + ), + # tz-aware stays tz`-aware + ( + DatetimeArray._from_sequence( + np.array(["2000-01-01T06:00:00", "2000-01-02T06:00:00"], dtype="M8[ns]") + ) + .tz_localize("UTC") + .tz_convert("US/Central"), + np.array( + [ + Timestamp("2000-01-01", tz="US/Central"), + Timestamp("2000-01-02", tz="US/Central"), + ] + ), + False, + ), + # Timedelta + ( + TimedeltaArray._from_sequence( + np.array([0, 3600000000000], dtype="i8").view("m8[ns]") + ), + np.array([0, 3600000000000], dtype="m8[ns]"), + True, + ), + # GH#26406 tz is preserved in Categorical[dt64tz] + ( + pd.Categorical(date_range("2016-01-01", periods=2, tz="US/Pacific")), + np.array( + [ + Timestamp("2016-01-01", tz="US/Pacific"), + Timestamp("2016-01-02", tz="US/Pacific"), + ] + ), + False, + ), + ], +) +def test_to_numpy(arr, expected, zero_copy, index_or_series_or_array): + box = index_or_series_or_array + + with tm.assert_produces_warning(None): + thing = box(arr) + + result = thing.to_numpy() + tm.assert_numpy_array_equal(result, expected) + + result = np.asarray(thing) + tm.assert_numpy_array_equal(result, expected) + + # Additionally, we check the `copy=` semantics for array/asarray + # (these are implemented by us via `__array__`). + result_cp1 = np.array(thing, copy=True) + result_cp2 = np.array(thing, copy=True) + # When called with `copy=True` NumPy/we should ensure a copy was made + assert not np.may_share_memory(result_cp1, result_cp2) + + if not np_version_gt2: + # copy=False semantics are only supported in NumPy>=2. + return + + if not zero_copy: + msg = "Starting with NumPy 2.0, the behavior of the 'copy' keyword has changed" + with tm.assert_produces_warning(FutureWarning, match=msg): + np.array(thing, copy=False) + + else: + result_nocopy1 = np.array(thing, copy=False) + result_nocopy2 = np.array(thing, copy=False) + # If copy=False was given, these must share the same data + assert np.may_share_memory(result_nocopy1, result_nocopy2) + + +@pytest.mark.parametrize("as_series", [True, False]) +@pytest.mark.parametrize( + "arr", [np.array([1, 2, 3], dtype="int64"), np.array(["a", "b", "c"], dtype=object)] +) +def test_to_numpy_copy(arr, as_series, using_infer_string): + obj = pd.Index(arr, copy=False) + if as_series: + obj = Series(obj.values, copy=False) + + # no copy by default + result = obj.to_numpy() + if using_infer_string and arr.dtype == object and obj.dtype.storage == "pyarrow": + assert np.shares_memory(arr, result) is False + else: + assert np.shares_memory(arr, result) is True + + result = obj.to_numpy(copy=False) + if using_infer_string and arr.dtype == object and obj.dtype.storage == "pyarrow": + assert np.shares_memory(arr, result) is False + else: + assert np.shares_memory(arr, result) is True + + # copy=True + result = obj.to_numpy(copy=True) + assert np.shares_memory(arr, result) is False + + +@pytest.mark.parametrize("as_series", [True, False]) +def test_to_numpy_dtype(as_series, unit): + tz = "US/Eastern" + obj = pd.DatetimeIndex(["2000", "2001"], tz=tz) + if as_series: + obj = Series(obj) + + # preserve tz by default + result = obj.to_numpy() + expected = np.array( + [Timestamp("2000", tz=tz), Timestamp("2001", tz=tz)], dtype=object + ) + tm.assert_numpy_array_equal(result, expected) + + result = obj.to_numpy(dtype="object") + tm.assert_numpy_array_equal(result, expected) + + result = obj.to_numpy(dtype="M8[ns]") + expected = np.array(["2000-01-01T05", "2001-01-01T05"], dtype="M8[ns]") + tm.assert_numpy_array_equal(result, expected) + + +@pytest.mark.parametrize( + "values, dtype, na_value, expected", + [ + ([1, 2, None], "float64", 0, [1.0, 2.0, 0.0]), + ( + [Timestamp("2000"), Timestamp("2000"), pd.NaT], + None, + Timestamp("2000"), + [np.datetime64("2000-01-01T00:00:00.000000000")] * 3, + ), + ], +) +def test_to_numpy_na_value_numpy_dtype( + index_or_series, values, dtype, na_value, expected +): + obj = index_or_series(values) + result = obj.to_numpy(dtype=dtype, na_value=na_value) + expected = np.array(expected) + tm.assert_numpy_array_equal(result, expected) + + +@pytest.mark.parametrize( + "data, multiindex, dtype, na_value, expected", + [ + ( + [1, 2, None, 4], + [(0, "a"), (0, "b"), (1, "b"), (1, "c")], + float, + None, + [1.0, 2.0, np.nan, 4.0], + ), + ( + [1, 2, None, 4], + [(0, "a"), (0, "b"), (1, "b"), (1, "c")], + float, + np.nan, + [1.0, 2.0, np.nan, 4.0], + ), + ( + [1.0, 2.0, np.nan, 4.0], + [("a", 0), ("a", 1), ("a", 2), ("b", 0)], + int, + 0, + [1, 2, 0, 4], + ), + ( + [Timestamp("2000"), Timestamp("2000"), pd.NaT], + [(0, Timestamp("2021")), (0, Timestamp("2022")), (1, Timestamp("2000"))], + None, + Timestamp("2000"), + [np.datetime64("2000-01-01T00:00:00.000000000")] * 3, + ), + ], +) +def test_to_numpy_multiindex_series_na_value( + data, multiindex, dtype, na_value, expected +): + index = pd.MultiIndex.from_tuples(multiindex) + series = Series(data, index=index) + result = series.to_numpy(dtype=dtype, na_value=na_value) + expected = np.array(expected) + tm.assert_numpy_array_equal(result, expected) + + +def test_to_numpy_kwargs_raises(): + # numpy + s = Series([1, 2, 3]) + msg = r"to_numpy\(\) got an unexpected keyword argument 'foo'" + with pytest.raises(TypeError, match=msg): + s.to_numpy(foo=True) + + # extension + s = Series([1, 2, 3], dtype="Int64") + with pytest.raises(TypeError, match=msg): + s.to_numpy(foo=True) + + +@pytest.mark.parametrize( + "data", + [ + {"a": [1, 2, 3], "b": [1, 2, None]}, + {"a": np.array([1, 2, 3]), "b": np.array([1, 2, np.nan])}, + {"a": pd.array([1, 2, 3]), "b": pd.array([1, 2, None])}, + ], +) +@pytest.mark.parametrize("dtype, na_value", [(float, np.nan), (object, None)]) +def test_to_numpy_dataframe_na_value(data, dtype, na_value): + # https://github.com/pandas-dev/pandas/issues/33820 + df = pd.DataFrame(data) + result = df.to_numpy(dtype=dtype, na_value=na_value) + expected = np.array([[1, 1], [2, 2], [3, na_value]], dtype=dtype) + tm.assert_numpy_array_equal(result, expected) + + +@pytest.mark.parametrize( + "data, expected", + [ + ( + {"a": pd.array([1, 2, None])}, + np.array([[1.0], [2.0], [np.nan]], dtype=float), + ), + ( + {"a": [1, 2, 3], "b": [1, 2, 3]}, + np.array([[1, 1], [2, 2], [3, 3]], dtype=float), + ), + ], +) +def test_to_numpy_dataframe_single_block(data, expected): + # https://github.com/pandas-dev/pandas/issues/33820 + df = pd.DataFrame(data) + result = df.to_numpy(dtype=float, na_value=np.nan) + tm.assert_numpy_array_equal(result, expected) + + +def test_to_numpy_dataframe_single_block_no_mutate(): + # https://github.com/pandas-dev/pandas/issues/33820 + result = pd.DataFrame(np.array([1.0, 2.0, np.nan])) + expected = pd.DataFrame(np.array([1.0, 2.0, np.nan])) + result.to_numpy(na_value=0.0) + tm.assert_frame_equal(result, expected) + + +class TestAsArray: + @pytest.mark.parametrize("tz", [None, "US/Central"]) + def test_asarray_object_dt64(self, tz): + ser = Series(date_range("2000", periods=2, tz=tz)) + + with tm.assert_produces_warning(None): + # Future behavior (for tzaware case) with no warning + result = np.asarray(ser, dtype=object) + + expected = np.array( + [Timestamp("2000-01-01", tz=tz), Timestamp("2000-01-02", tz=tz)] + ) + tm.assert_numpy_array_equal(result, expected) + + def test_asarray_tz_naive(self): + # This shouldn't produce a warning. + ser = Series(date_range("2000", periods=2)) + expected = np.array(["2000-01-01", "2000-01-02"], dtype="M8[ns]") + result = np.asarray(ser) + + tm.assert_numpy_array_equal(result, expected) + + def test_asarray_tz_aware(self): + tz = "US/Central" + ser = Series(date_range("2000", periods=2, tz=tz)) + expected = np.array(["2000-01-01T06", "2000-01-02T06"], dtype="M8[ns]") + result = np.asarray(ser, dtype="datetime64[ns]") + + tm.assert_numpy_array_equal(result, expected) + + # Old behavior with no warning + result = np.asarray(ser, dtype="M8[ns]") + + tm.assert_numpy_array_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/base/test_fillna.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/base/test_fillna.py new file mode 100644 index 0000000000000000000000000000000000000000..7300d3013305a7ca08312ae85cc42ae8950acf23 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/base/test_fillna.py @@ -0,0 +1,60 @@ +""" +Though Index.fillna and Series.fillna has separate impl, +test here to confirm these works as the same +""" + +import numpy as np +import pytest + +from pandas import MultiIndex +import pandas._testing as tm +from pandas.tests.base.common import allow_na_ops + + +def test_fillna(index_or_series_obj): + # GH 11343 + obj = index_or_series_obj + + if isinstance(obj, MultiIndex): + msg = "isna is not defined for MultiIndex" + with pytest.raises(NotImplementedError, match=msg): + obj.fillna(0) + return + + # values will not be changed + fill_value = obj.values[0] if len(obj) > 0 else 0 + result = obj.fillna(fill_value) + + tm.assert_equal(obj, result) + + # check shallow_copied + assert obj is not result + + +@pytest.mark.parametrize("null_obj", [np.nan, None]) +def test_fillna_null(null_obj, index_or_series_obj): + # GH 11343 + obj = index_or_series_obj + klass = type(obj) + + if not allow_na_ops(obj): + pytest.skip(f"{klass} doesn't allow for NA operations") + elif len(obj) < 1: + pytest.skip("Test doesn't make sense on empty data") + elif isinstance(obj, MultiIndex): + pytest.skip(f"MultiIndex can't hold '{null_obj}'") + + values = obj._values + fill_value = values[0] + expected = values.copy() + values[0:2] = null_obj + expected[0:2] = fill_value + + expected = klass(expected) + obj = klass(values) + + result = obj.fillna(fill_value) + tm.assert_equal(result, expected) + + # check shallow_copied + assert obj is not result diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/base/test_misc.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/base/test_misc.py new file mode 100644 index 0000000000000000000000000000000000000000..1bf0a8d75dd4f688a5776cc3be5523d997518a85 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/base/test_misc.py @@ -0,0 +1,190 @@ +import sys + +import numpy as np +import pytest + +from pandas._config import using_string_dtype + +from pandas.compat import PYPY + +from pandas.core.dtypes.common import ( + is_dtype_equal, + is_object_dtype, +) + +import pandas as pd +from pandas import ( + Index, + Series, +) +import pandas._testing as tm + + +def test_isnull_notnull_docstrings(): + # GH#41855 make sure its clear these are aliases + doc = pd.DataFrame.notnull.__doc__ + assert doc.startswith("\nDataFrame.notnull is an alias for DataFrame.notna.\n") + doc = pd.DataFrame.isnull.__doc__ + assert doc.startswith("\nDataFrame.isnull is an alias for DataFrame.isna.\n") + + doc = Series.notnull.__doc__ + assert doc.startswith("\nSeries.notnull is an alias for Series.notna.\n") + doc = Series.isnull.__doc__ + assert doc.startswith("\nSeries.isnull is an alias for Series.isna.\n") + + +@pytest.mark.parametrize( + "op_name, op", + [ + ("add", "+"), + ("sub", "-"), + ("mul", "*"), + ("mod", "%"), + ("pow", "**"), + ("truediv", "/"), + ("floordiv", "//"), + ], +) +def test_binary_ops_docstring(frame_or_series, op_name, op): + # not using the all_arithmetic_functions fixture with _get_opstr + # as _get_opstr is used internally in the dynamic implementation of the docstring + klass = frame_or_series + + operand1 = klass.__name__.lower() + operand2 = "other" + expected_str = " ".join([operand1, op, operand2]) + assert expected_str in getattr(klass, op_name).__doc__ + + # reverse version of the binary ops + expected_str = " ".join([operand2, op, operand1]) + assert expected_str in getattr(klass, "r" + op_name).__doc__ + + +def test_ndarray_compat_properties(index_or_series_obj): + obj = index_or_series_obj + + # Check that we work. + for p in ["shape", "dtype", "T", "nbytes"]: + assert getattr(obj, p, None) is not None + + # deprecated properties + for p in ["strides", "itemsize", "base", "data"]: + assert not hasattr(obj, p) + + msg = "can only convert an array of size 1 to a Python scalar" + with pytest.raises(ValueError, match=msg): + obj.item() # len > 1 + + assert obj.ndim == 1 + assert obj.size == len(obj) + + assert Index([1]).item() == 1 + assert Series([1]).item() == 1 + + +@pytest.mark.skipif( + PYPY or using_string_dtype(), + reason="not relevant for PyPy doesn't work properly for arrow strings", +) +def test_memory_usage(index_or_series_memory_obj): + obj = index_or_series_memory_obj + # Clear index caches so that len(obj) == 0 report 0 memory usage + if isinstance(obj, Series): + is_ser = True + obj.index._engine.clear_mapping() + else: + is_ser = False + obj._engine.clear_mapping() + + res = obj.memory_usage() + res_deep = obj.memory_usage(deep=True) + + is_object = is_object_dtype(obj) or (is_ser and is_object_dtype(obj.index)) + is_categorical = isinstance(obj.dtype, pd.CategoricalDtype) or ( + is_ser and isinstance(obj.index.dtype, pd.CategoricalDtype) + ) + is_object_string = is_dtype_equal(obj, "string[python]") or ( + is_ser and is_dtype_equal(obj.index.dtype, "string[python]") + ) + + if len(obj) == 0: + expected = 0 + assert res_deep == res == expected + elif is_object or is_categorical or is_object_string: + # only deep will pick them up + assert res_deep > res + else: + assert res == res_deep + + # sys.getsizeof will call the .memory_usage with + # deep=True, and add on some GC overhead + diff = res_deep - sys.getsizeof(obj) + assert abs(diff) < 100 + + +def test_memory_usage_components_series(series_with_simple_index): + series = series_with_simple_index + total_usage = series.memory_usage(index=True) + non_index_usage = series.memory_usage(index=False) + index_usage = series.index.memory_usage() + assert total_usage == non_index_usage + index_usage + + +@pytest.mark.parametrize("dtype", tm.NARROW_NP_DTYPES) +def test_memory_usage_components_narrow_series(dtype): + series = Series(range(5), dtype=dtype, index=[f"i-{i}" for i in range(5)], name="a") + total_usage = series.memory_usage(index=True) + non_index_usage = series.memory_usage(index=False) + index_usage = series.index.memory_usage() + assert total_usage == non_index_usage + index_usage + + +def test_searchsorted(request, index_or_series_obj): + # numpy.searchsorted calls obj.searchsorted under the hood. + # See gh-12238 + obj = index_or_series_obj + + if isinstance(obj, pd.MultiIndex): + # See gh-14833 + request.applymarker( + pytest.mark.xfail( + reason="np.searchsorted doesn't work on pd.MultiIndex: GH 14833" + ) + ) + elif obj.dtype.kind == "c" and isinstance(obj, Index): + # TODO: Should Series cases also raise? Looks like they use numpy + # comparison semantics https://github.com/numpy/numpy/issues/15981 + mark = pytest.mark.xfail(reason="complex objects are not comparable") + request.applymarker(mark) + + max_obj = max(obj, default=0) + index = np.searchsorted(obj, max_obj) + assert 0 <= index <= len(obj) + + index = np.searchsorted(obj, max_obj, sorter=range(len(obj))) + assert 0 <= index <= len(obj) + + +@pytest.mark.filterwarnings(r"ignore:Dtype inference:FutureWarning") +def test_access_by_position(index_flat): + index = index_flat + + if len(index) == 0: + pytest.skip("Test doesn't make sense on empty data") + + series = Series(index) + assert index[0] == series.iloc[0] + assert index[5] == series.iloc[5] + assert index[-1] == series.iloc[-1] + + size = len(index) + assert index[-1] == index[size - 1] + + msg = f"index {size} is out of bounds for axis 0 with size {size}" + if isinstance(index.dtype, pd.StringDtype) and index.dtype.storage == "pyarrow": + msg = "index out of bounds" + with pytest.raises(IndexError, match=msg): + index[size] + msg = "single positional indexer is out-of-bounds" + with pytest.raises(IndexError, match=msg): + series.iloc[size] diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/base/test_transpose.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/base/test_transpose.py new file mode 100644 index 0000000000000000000000000000000000000000..246f33d27476cb419620fb8571984619785f9b62 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/base/test_transpose.py @@ -0,0 +1,56 @@ +import numpy as np +import pytest + +from pandas import ( + CategoricalDtype, + DataFrame, +) +import pandas._testing as tm + + +def test_transpose(index_or_series_obj): + obj = index_or_series_obj + tm.assert_equal(obj.transpose(), obj) + + +def test_transpose_non_default_axes(index_or_series_obj): + msg = "the 'axes' parameter is not supported" + obj = index_or_series_obj + with pytest.raises(ValueError, match=msg): + obj.transpose(1) + with pytest.raises(ValueError, match=msg): + obj.transpose(axes=1) + + +def test_numpy_transpose(index_or_series_obj): + msg = "the 'axes' parameter is not supported" + obj = index_or_series_obj + tm.assert_equal(np.transpose(obj), obj) + + with pytest.raises(ValueError, match=msg): + np.transpose(obj, axes=1) + + +@pytest.mark.parametrize( + "data, transposed_data, index, columns, dtype", + [ + ([[1], [2]], [[1, 2]], ["a", "a"], ["b"], int), + ([[1], [2]], [[1, 2]], ["a", "a"], ["b"], CategoricalDtype([1, 2])), + ([[1, 2]], [[1], [2]], ["b"], ["a", "a"], int), + ([[1, 2]], [[1], [2]], ["b"], ["a", "a"], CategoricalDtype([1, 2])), + ([[1, 2], [3, 4]], [[1, 3], [2, 4]], ["a", "a"], ["b", "b"], int), + ( + [[1, 2], [3, 4]], + [[1, 3], [2, 4]], + ["a", "a"], + ["b", "b"], + CategoricalDtype([1, 2, 3, 4]), + ), + ], +) +def test_duplicate_labels(data, transposed_data, index, columns, dtype): + # GH 42380 + df = DataFrame(data, index=index, columns=columns, dtype=dtype) + result = df.T + expected = DataFrame(transposed_data, index=columns, columns=index, dtype=dtype) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/base/test_unique.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/base/test_unique.py new file mode 100644 index 0000000000000000000000000000000000000000..1add56b47b36399960f16724fa8ff14e7bfd4f0e --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/base/test_unique.py @@ -0,0 +1,121 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm +from pandas.tests.base.common import allow_na_ops + + +@pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") +def test_unique(index_or_series_obj): + obj = index_or_series_obj + obj = np.repeat(obj, range(1, len(obj) + 1)) + result = obj.unique() + + # dict.fromkeys preserves the order + unique_values = list(dict.fromkeys(obj.values)) + if isinstance(obj, pd.MultiIndex): + expected = pd.MultiIndex.from_tuples(unique_values) + expected.names = obj.names + tm.assert_index_equal(result, expected, exact=True) + elif isinstance(obj, pd.Index): + expected = pd.Index(unique_values, dtype=obj.dtype) + if isinstance(obj.dtype, pd.DatetimeTZDtype): + expected = expected.normalize() + tm.assert_index_equal(result, expected, exact=True) + else: + expected = np.array(unique_values) + tm.assert_numpy_array_equal(result, expected) + + +@pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") +@pytest.mark.parametrize("null_obj", [np.nan, None]) +def test_unique_null(null_obj, index_or_series_obj): + obj = index_or_series_obj + + if not allow_na_ops(obj): + pytest.skip("type doesn't allow for NA operations") + elif len(obj) < 1: + pytest.skip("Test doesn't make sense on empty data") + elif isinstance(obj, pd.MultiIndex): + pytest.skip(f"MultiIndex can't hold '{null_obj}'") + + values = obj._values + values[0:2] = null_obj + + klass = type(obj) + repeated_values = np.repeat(values, range(1, len(values) + 1)) + obj = klass(repeated_values, dtype=obj.dtype) + result = obj.unique() + + unique_values_raw = dict.fromkeys(obj.values) + # because np.nan == np.nan is False, but None == None is True + # np.nan would be duplicated, whereas None wouldn't + unique_values_not_null = [val for val in unique_values_raw if not pd.isnull(val)] + unique_values = [null_obj] + unique_values_not_null + + if isinstance(obj, pd.Index): + expected = pd.Index(unique_values, dtype=obj.dtype) + if isinstance(obj.dtype, pd.DatetimeTZDtype): + result = result.normalize() + expected = expected.normalize() + tm.assert_index_equal(result, expected, exact=True) + else: + expected = np.array(unique_values, dtype=obj.dtype) + tm.assert_numpy_array_equal(result, expected) + + +def test_nunique(index_or_series_obj): + obj = index_or_series_obj + obj = np.repeat(obj, range(1, len(obj) + 1)) + expected = len(obj.unique()) + assert obj.nunique(dropna=False) == expected + + +@pytest.mark.parametrize("null_obj", [np.nan, None]) +def test_nunique_null(null_obj, index_or_series_obj): + obj = index_or_series_obj + + if not allow_na_ops(obj): + pytest.skip("type doesn't allow for NA operations") + elif isinstance(obj, pd.MultiIndex): + pytest.skip(f"MultiIndex can't hold '{null_obj}'") + + values = obj._values + values[0:2] = null_obj + + klass = type(obj) + repeated_values = np.repeat(values, range(1, len(values) + 1)) + obj = klass(repeated_values, dtype=obj.dtype) + + if isinstance(obj, pd.CategoricalIndex): + assert obj.nunique() == len(obj.categories) + assert obj.nunique(dropna=False) == len(obj.categories) + 1 + else: + num_unique_values = len(obj.unique()) + assert obj.nunique() == max(0, num_unique_values - 1) + assert obj.nunique(dropna=False) == max(0, num_unique_values) + + +@pytest.mark.single_cpu +def test_unique_bad_unicode(index_or_series): + # regression test for #34550 + uval = "\ud83d" # smiley emoji + + obj = index_or_series([uval] * 2, dtype=object) + result = obj.unique() + + if isinstance(obj, pd.Index): + expected = pd.Index(["\ud83d"], dtype=object) + tm.assert_index_equal(result, expected, exact=True) + else: + expected = np.array(["\ud83d"], dtype=object) + tm.assert_numpy_array_equal(result, expected) + + +@pytest.mark.parametrize("dropna", [True, False]) +def test_nunique_dropna(dropna): + # GH37566 + ser = pd.Series(["yes", "yes", pd.NA, np.nan, None, pd.NaT]) + res = ser.nunique(dropna) + assert res == 1 if dropna else 5 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/base/test_value_counts.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/base/test_value_counts.py new file mode 100644 index 0000000000000000000000000000000000000000..1f643f24ed5f773b605f52b4e257ab5747da538b --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/base/test_value_counts.py @@ -0,0 +1,356 @@ +import collections +from datetime import timedelta + +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + DatetimeIndex, + Index, + Interval, + IntervalIndex, + MultiIndex, + Series, + Timedelta, + TimedeltaIndex, + array, +) +import pandas._testing as tm +from pandas.tests.base.common import allow_na_ops + + +@pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") +def test_value_counts(index_or_series_obj): + obj = index_or_series_obj + obj = np.repeat(obj, range(1, len(obj) + 1)) + result = obj.value_counts() + + counter = collections.Counter(obj) + expected = Series(dict(counter.most_common()), dtype=np.int64, name="count") + + if obj.dtype != np.float16: + expected.index = expected.index.astype(obj.dtype) + else: + with pytest.raises(NotImplementedError, match="float16 indexes are not "): + expected.index.astype(obj.dtype) + return + if isinstance(expected.index, MultiIndex): + expected.index.names = obj.names + else: + expected.index.name = obj.name + + if not isinstance(result.dtype, np.dtype): + if getattr(obj.dtype, "storage", "") == "pyarrow": + expected = expected.astype("int64[pyarrow]") + else: + # i.e IntegerDtype + expected = expected.astype("Int64") + + # TODO(GH#32514): Order of entries with the same count is inconsistent + # on CI (gh-32449) + if obj.duplicated().any(): + result = result.sort_index() + expected = expected.sort_index() + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("null_obj", [np.nan, None]) +@pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") +def test_value_counts_null(null_obj, index_or_series_obj): + orig = index_or_series_obj + obj = orig.copy() + + if not allow_na_ops(obj): + pytest.skip("type doesn't allow for NA operations") + elif len(obj) < 1: + pytest.skip("Test doesn't make sense on empty data") + elif isinstance(orig, MultiIndex): + pytest.skip(f"MultiIndex can't hold '{null_obj}'") + + values = obj._values + values[0:2] = null_obj + + klass = type(obj) + repeated_values = np.repeat(values, range(1, len(values) + 1)) + obj = klass(repeated_values, dtype=obj.dtype) + + # because np.nan == np.nan is False, but None == None is True + # np.nan would be duplicated, whereas None wouldn't + counter = collections.Counter(obj.dropna()) + expected = Series(dict(counter.most_common()), dtype=np.int64, name="count") + + if obj.dtype != np.float16: + expected.index = expected.index.astype(obj.dtype) + else: + with pytest.raises(NotImplementedError, match="float16 indexes are not "): + expected.index.astype(obj.dtype) + return + expected.index.name = obj.name + + result = obj.value_counts() + if obj.duplicated().any(): + # TODO(GH#32514): + # Order of entries with the same count is inconsistent on CI (gh-32449) + expected = expected.sort_index() + result = result.sort_index() + + if not isinstance(result.dtype, np.dtype): + if getattr(obj.dtype, "storage", "") == "pyarrow": + expected = expected.astype("int64[pyarrow]") + else: + # i.e IntegerDtype + expected = expected.astype("Int64") + tm.assert_series_equal(result, expected) + + expected[null_obj] = 3 + + result = obj.value_counts(dropna=False) + if obj.duplicated().any(): + # TODO(GH#32514): + # Order of entries with the same count is inconsistent on CI (gh-32449) + expected = expected.sort_index() + result = result.sort_index() + tm.assert_series_equal(result, expected) + + +def test_value_counts_inferred(index_or_series, using_infer_string): + klass = index_or_series + s_values = ["a", "b", "b", "b", "b", "c", "d", "d", "a", "a"] + s = klass(s_values) + expected = Series([4, 3, 2, 1], index=["b", "a", "d", "c"], name="count") + tm.assert_series_equal(s.value_counts(), expected) + + if isinstance(s, Index): + exp = Index(np.unique(np.array(s_values, dtype=np.object_))) + tm.assert_index_equal(s.unique(), exp) + else: + exp = np.unique(np.array(s_values, dtype=np.object_)) + if using_infer_string: + exp = array(exp, dtype="str") + tm.assert_equal(s.unique(), exp) + + assert s.nunique() == 4 + # don't sort, have to sort after the fact as not sorting is + # platform-dep + hist = s.value_counts(sort=False).sort_values() + expected = Series([3, 1, 4, 2], index=list("acbd"), name="count").sort_values() + tm.assert_series_equal(hist, expected) + + # sort ascending + hist = s.value_counts(ascending=True) + expected = Series([1, 2, 3, 4], index=list("cdab"), name="count") + tm.assert_series_equal(hist, expected) + + # relative histogram. + hist = s.value_counts(normalize=True) + expected = Series( + [0.4, 0.3, 0.2, 0.1], index=["b", "a", "d", "c"], name="proportion" + ) + tm.assert_series_equal(hist, expected) + + +def test_value_counts_bins(index_or_series, using_infer_string): + klass = index_or_series + s_values = ["a", "b", "b", "b", "b", "c", "d", "d", "a", "a"] + s = klass(s_values) + + # bins + msg = "bins argument only works with numeric data" + with pytest.raises(TypeError, match=msg): + s.value_counts(bins=1) + + s1 = Series([1, 1, 2, 3]) + res1 = s1.value_counts(bins=1) + exp1 = Series({Interval(0.997, 3.0): 4}, name="count") + tm.assert_series_equal(res1, exp1) + res1n = s1.value_counts(bins=1, normalize=True) + exp1n = Series({Interval(0.997, 3.0): 1.0}, name="proportion") + tm.assert_series_equal(res1n, exp1n) + + if isinstance(s1, Index): + tm.assert_index_equal(s1.unique(), Index([1, 2, 3])) + else: + exp = np.array([1, 2, 3], dtype=np.int64) + tm.assert_numpy_array_equal(s1.unique(), exp) + + assert s1.nunique() == 3 + + # these return the same + res4 = s1.value_counts(bins=4, dropna=True) + intervals = IntervalIndex.from_breaks([0.997, 1.5, 2.0, 2.5, 3.0]) + exp4 = Series([2, 1, 1, 0], index=intervals.take([0, 1, 3, 2]), name="count") + tm.assert_series_equal(res4, exp4) + + res4 = s1.value_counts(bins=4, dropna=False) + intervals = IntervalIndex.from_breaks([0.997, 1.5, 2.0, 2.5, 3.0]) + exp4 = Series([2, 1, 1, 0], index=intervals.take([0, 1, 3, 2]), name="count") + tm.assert_series_equal(res4, exp4) + + res4n = s1.value_counts(bins=4, normalize=True) + exp4n = Series( + [0.5, 0.25, 0.25, 0], index=intervals.take([0, 1, 3, 2]), name="proportion" + ) + tm.assert_series_equal(res4n, exp4n) + + # handle NA's properly + s_values = ["a", "b", "b", "b", np.nan, np.nan, "d", "d", "a", "a", "b"] + s = klass(s_values) + expected = Series([4, 3, 2], index=["b", "a", "d"], name="count") + tm.assert_series_equal(s.value_counts(), expected) + + if isinstance(s, Index): + exp = Index(["a", "b", np.nan, "d"]) + tm.assert_index_equal(s.unique(), exp) + else: + exp = np.array(["a", "b", np.nan, "d"], dtype=object) + if using_infer_string: + exp = array(exp, dtype="str") + tm.assert_equal(s.unique(), exp) + assert s.nunique() == 3 + + s = klass({}) if klass is dict else klass({}, dtype=object) + expected = Series([], dtype=np.int64, name="count") + tm.assert_series_equal(s.value_counts(), expected, check_index_type=False) + # returned dtype differs depending on original + if isinstance(s, Index): + tm.assert_index_equal(s.unique(), Index([]), exact=False) + else: + tm.assert_numpy_array_equal(s.unique(), np.array([]), check_dtype=False) + + assert s.nunique() == 0 + + +def test_value_counts_datetime64(index_or_series, unit): + klass = index_or_series + + # GH 3002, datetime64[ns] + # don't test names though + df = pd.DataFrame( + { + "person_id": ["xxyyzz", "xxyyzz", "xxyyzz", "xxyyww", "foofoo", "foofoo"], + "dt": pd.to_datetime( + [ + "2010-01-01", + "2010-01-01", + "2010-01-01", + "2009-01-01", + "2008-09-09", + "2008-09-09", + ] + ).as_unit(unit), + "food": ["PIE", "GUM", "EGG", "EGG", "PIE", "GUM"], + } + ) + + s = klass(df["dt"].copy()) + s.name = None + idx = pd.to_datetime( + ["2010-01-01 00:00:00", "2008-09-09 00:00:00", "2009-01-01 00:00:00"] + ).as_unit(unit) + expected_s = Series([3, 2, 1], index=idx, name="count") + tm.assert_series_equal(s.value_counts(), expected_s) + + expected = array( + np.array( + ["2010-01-01 00:00:00", "2009-01-01 00:00:00", "2008-09-09 00:00:00"], + dtype=f"datetime64[{unit}]", + ) + ) + result = s.unique() + if isinstance(s, Index): + tm.assert_index_equal(result, DatetimeIndex(expected)) + else: + tm.assert_extension_array_equal(result, expected) + + assert s.nunique() == 3 + + # with NaT + s = df["dt"].copy() + s = klass(list(s.values) + [pd.NaT] * 4) + if klass is Series: + s = s.dt.as_unit(unit) + else: + s = s.as_unit(unit) + + result = s.value_counts() + assert result.index.dtype == f"datetime64[{unit}]" + tm.assert_series_equal(result, expected_s) + + result = s.value_counts(dropna=False) + expected_s = pd.concat( + [ + Series([4], index=DatetimeIndex([pd.NaT]).as_unit(unit), name="count"), + expected_s, + ] + ) + tm.assert_series_equal(result, expected_s) + + assert s.dtype == f"datetime64[{unit}]" + unique = s.unique() + assert unique.dtype == f"datetime64[{unit}]" + + # numpy_array_equal cannot compare pd.NaT + if isinstance(s, Index): + exp_idx = DatetimeIndex(expected.tolist() + [pd.NaT]).as_unit(unit) + tm.assert_index_equal(unique, exp_idx) + else: + tm.assert_extension_array_equal(unique[:3], expected) + assert pd.isna(unique[3]) + + assert s.nunique() == 3 + assert s.nunique(dropna=False) == 4 + + +def test_value_counts_timedelta64(index_or_series, unit): + # timedelta64[ns] + klass = index_or_series + + day = Timedelta(timedelta(1)).as_unit(unit) + tdi = TimedeltaIndex([day], name="dt").as_unit(unit) + + tdvals = np.zeros(6, dtype=f"m8[{unit}]") + day + td = klass(tdvals, name="dt") + + result = td.value_counts() + expected_s = Series([6], index=tdi, name="count") + tm.assert_series_equal(result, expected_s) + + expected = tdi + result = td.unique() + if isinstance(td, Index): + tm.assert_index_equal(result, expected) + else: + tm.assert_extension_array_equal(result, expected._values) + + td2 = day + np.zeros(6, dtype=f"m8[{unit}]") + td2 = klass(td2, name="dt") + result2 = td2.value_counts() + tm.assert_series_equal(result2, expected_s) + + +@pytest.mark.parametrize("dropna", [True, False]) +def test_value_counts_with_nan(dropna, index_or_series): + # GH31944 + klass = index_or_series + values = [True, pd.NA, np.nan] + obj = klass(values) + res = obj.value_counts(dropna=dropna) + if dropna is True: + expected = Series([1], index=Index([True], dtype=obj.dtype), name="count") + else: + expected = Series([1, 1, 1], index=[True, pd.NA, np.nan], name="count") + tm.assert_series_equal(res, expected) + + +def test_value_counts_object_inference_deprecated(): + # GH#56161 + dti = pd.date_range("2016-01-01", periods=3, tz="UTC") + + idx = dti.astype(object) + msg = "The behavior of value_counts with object-dtype is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + res = idx.value_counts() + + exp = dti.value_counts() + tm.assert_series_equal(res, exp) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/computation/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/computation/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/computation/test_compat.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/computation/test_compat.py new file mode 100644 index 0000000000000000000000000000000000000000..856a5b3a22a95d35cc577050f52d762b065e3ddf --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/computation/test_compat.py @@ -0,0 +1,32 @@ +import pytest + +from pandas.compat._optional import VERSIONS + +import pandas as pd +from pandas.core.computation import expr +from pandas.core.computation.engines import ENGINES +from pandas.util.version import Version + + +def test_compat(): + # test we have compat with our version of numexpr + + from pandas.core.computation.check import NUMEXPR_INSTALLED + + ne = pytest.importorskip("numexpr") + + ver = ne.__version__ + if Version(ver) < Version(VERSIONS["numexpr"]): + assert not NUMEXPR_INSTALLED + else: + assert NUMEXPR_INSTALLED + + +@pytest.mark.parametrize("engine", ENGINES) +@pytest.mark.parametrize("parser", expr.PARSERS) +def test_invalid_numexpr_version(engine, parser): + if engine == "numexpr": + pytest.importorskip("numexpr") + a, b = 1, 2 # noqa: F841 + res = pd.eval("a + b", engine=engine, parser=parser) + assert res == 3 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/computation/test_eval.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/computation/test_eval.py new file mode 100644 index 0000000000000000000000000000000000000000..859cbd30cfeadb29add9cabd770be0d6bd67d2d1 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/computation/test_eval.py @@ -0,0 +1,2006 @@ +from __future__ import annotations + +from functools import reduce +from itertools import product +import operator + +import numpy as np +import pytest + +from pandas.compat import PY312 +from pandas.compat._optional import import_optional_dependency +from pandas.errors import ( + NumExprClobberingError, + PerformanceWarning, + UndefinedVariableError, +) +import pandas.util._test_decorators as td + +from pandas.core.dtypes.common import ( + is_bool, + is_float, + is_list_like, + is_scalar, +) + +import pandas as pd +from pandas import ( + DataFrame, + Index, + Series, + date_range, + period_range, + timedelta_range, +) +import pandas._testing as tm +from pandas.core.computation import ( + expr, + pytables, +) +from pandas.core.computation.engines import ENGINES +from pandas.core.computation.expr import ( + BaseExprVisitor, + PandasExprVisitor, + PythonExprVisitor, +) +from pandas.core.computation.expressions import ( + NUMEXPR_INSTALLED, + USE_NUMEXPR, +) +from pandas.core.computation.ops import ( + ARITH_OPS_SYMS, + SPECIAL_CASE_ARITH_OPS_SYMS, + _binary_math_ops, + _binary_ops_dict, + _unary_math_ops, +) +from pandas.core.computation.scope import DEFAULT_GLOBALS +from pandas.util.version import Version + +numexpr = import_optional_dependency("numexpr", errors="ignore") + + +@pytest.fixture( + params=( + pytest.param( + engine, + marks=[ + pytest.mark.skipif( + engine == "numexpr" and not USE_NUMEXPR, + reason=f"numexpr enabled->{USE_NUMEXPR}, " + f"installed->{NUMEXPR_INSTALLED}", + ), + td.skip_if_no("numexpr"), + ], + ) + for engine in ENGINES + ) +) +def engine(request): + return request.param + + +@pytest.fixture(params=expr.PARSERS) +def parser(request): + return request.param + + +def _eval_single_bin(lhs, cmp1, rhs, engine): + c = _binary_ops_dict[cmp1] + if ENGINES[engine].has_neg_frac: + try: + return c(lhs, rhs) + except ValueError as e: + if str(e).startswith( + "negative number cannot be raised to a fractional power" + ): + return np.nan + raise + return c(lhs, rhs) + + +# TODO: using range(5) here is a kludge +@pytest.fixture( + params=list(range(5)), + ids=["DataFrame", "Series", "SeriesNaN", "DataFrameNaN", "float"], +) +def lhs(request): + nan_df1 = DataFrame(np.random.default_rng(2).standard_normal((10, 5))) + nan_df1[nan_df1 > 0.5] = np.nan + + opts = ( + DataFrame(np.random.default_rng(2).standard_normal((10, 5))), + Series(np.random.default_rng(2).standard_normal(5)), + Series([1, 2, np.nan, np.nan, 5]), + nan_df1, + np.random.default_rng(2).standard_normal(), + ) + return opts[request.param] + + +rhs = lhs +midhs = lhs + + +@pytest.fixture +def idx_func_dict(): + return { + "i": lambda n: Index(np.arange(n), dtype=np.int64), + "f": lambda n: Index(np.arange(n), dtype=np.float64), + "s": lambda n: Index([f"{i}_{chr(i)}" for i in range(97, 97 + n)]), + "dt": lambda n: date_range("2020-01-01", periods=n), + "td": lambda n: timedelta_range("1 day", periods=n), + "p": lambda n: period_range("2020-01-01", periods=n, freq="D"), + } + + +class TestEval: + @pytest.mark.parametrize( + "cmp1", + ["!=", "==", "<=", ">=", "<", ">"], + ids=["ne", "eq", "le", "ge", "lt", "gt"], + ) + @pytest.mark.parametrize("cmp2", [">", "<"], ids=["gt", "lt"]) + @pytest.mark.parametrize("binop", expr.BOOL_OPS_SYMS) + def test_complex_cmp_ops(self, cmp1, cmp2, binop, lhs, rhs, engine, parser): + if parser == "python" and binop in ["and", "or"]: + msg = "'BoolOp' nodes are not implemented" + with pytest.raises(NotImplementedError, match=msg): + ex = f"(lhs {cmp1} rhs) {binop} (lhs {cmp2} rhs)" + pd.eval(ex, engine=engine, parser=parser) + return + + lhs_new = _eval_single_bin(lhs, cmp1, rhs, engine) + rhs_new = _eval_single_bin(lhs, cmp2, rhs, engine) + expected = _eval_single_bin(lhs_new, binop, rhs_new, engine) + + ex = f"(lhs {cmp1} rhs) {binop} (lhs {cmp2} rhs)" + result = pd.eval(ex, engine=engine, parser=parser) + tm.assert_equal(result, expected) + + @pytest.mark.parametrize("cmp_op", expr.CMP_OPS_SYMS) + def test_simple_cmp_ops(self, cmp_op, lhs, rhs, engine, parser): + lhs = lhs < 0 + rhs = rhs < 0 + + if parser == "python" and cmp_op in ["in", "not in"]: + msg = "'(In|NotIn)' nodes are not implemented" + + with pytest.raises(NotImplementedError, match=msg): + ex = f"lhs {cmp_op} rhs" + pd.eval(ex, engine=engine, parser=parser) + return + + ex = f"lhs {cmp_op} rhs" + msg = "|".join( + [ + r"only list-like( or dict-like)? objects are allowed to be " + r"passed to (DataFrame\.)?isin\(\), you passed a " + r"(`|')bool(`|')", + "argument of type 'bool' is not iterable", + ] + ) + if cmp_op in ("in", "not in") and not is_list_like(rhs): + with pytest.raises(TypeError, match=msg): + pd.eval( + ex, + engine=engine, + parser=parser, + local_dict={"lhs": lhs, "rhs": rhs}, + ) + else: + expected = _eval_single_bin(lhs, cmp_op, rhs, engine) + result = pd.eval(ex, engine=engine, parser=parser) + tm.assert_equal(result, expected) + + @pytest.mark.parametrize("op", expr.CMP_OPS_SYMS) + def test_compound_invert_op(self, op, lhs, rhs, request, engine, parser): + if parser == "python" and op in ["in", "not in"]: + msg = "'(In|NotIn)' nodes are not implemented" + with pytest.raises(NotImplementedError, match=msg): + ex = f"~(lhs {op} rhs)" + pd.eval(ex, engine=engine, parser=parser) + return + + if ( + is_float(lhs) + and not is_float(rhs) + and op in ["in", "not in"] + and engine == "python" + and parser == "pandas" + ): + mark = pytest.mark.xfail( + reason="Looks like expected is negative, unclear whether " + "expected is incorrect or result is incorrect" + ) + request.applymarker(mark) + skip_these = ["in", "not in"] + ex = f"~(lhs {op} rhs)" + + msg = "|".join( + [ + r"only list-like( or dict-like)? objects are allowed to be " + r"passed to (DataFrame\.)?isin\(\), you passed a " + r"(`|')float(`|')", + "argument of type 'float' is not iterable", + ] + ) + if is_scalar(rhs) and op in skip_these: + with pytest.raises(TypeError, match=msg): + pd.eval( + ex, + engine=engine, + parser=parser, + local_dict={"lhs": lhs, "rhs": rhs}, + ) + else: + # compound + if is_scalar(lhs) and is_scalar(rhs): + lhs, rhs = (np.array([x]) for x in (lhs, rhs)) + expected = _eval_single_bin(lhs, op, rhs, engine) + if is_scalar(expected): + expected = not expected + else: + expected = ~expected + result = pd.eval(ex, engine=engine, parser=parser) + tm.assert_almost_equal(expected, result) + + @pytest.mark.parametrize("cmp1", ["<", ">"]) + @pytest.mark.parametrize("cmp2", ["<", ">"]) + def test_chained_cmp_op(self, cmp1, cmp2, lhs, midhs, rhs, engine, parser): + mid = midhs + if parser == "python": + ex1 = f"lhs {cmp1} mid {cmp2} rhs" + msg = "'BoolOp' nodes are not implemented" + with pytest.raises(NotImplementedError, match=msg): + pd.eval(ex1, engine=engine, parser=parser) + return + + lhs_new = _eval_single_bin(lhs, cmp1, mid, engine) + rhs_new = _eval_single_bin(mid, cmp2, rhs, engine) + + if lhs_new is not None and rhs_new is not None: + ex1 = f"lhs {cmp1} mid {cmp2} rhs" + ex2 = f"lhs {cmp1} mid and mid {cmp2} rhs" + ex3 = f"(lhs {cmp1} mid) & (mid {cmp2} rhs)" + expected = _eval_single_bin(lhs_new, "&", rhs_new, engine) + + for ex in (ex1, ex2, ex3): + result = pd.eval(ex, engine=engine, parser=parser) + + tm.assert_almost_equal(result, expected) + + @pytest.mark.parametrize( + "arith1", sorted(set(ARITH_OPS_SYMS).difference(SPECIAL_CASE_ARITH_OPS_SYMS)) + ) + def test_binary_arith_ops(self, arith1, lhs, rhs, engine, parser): + ex = f"lhs {arith1} rhs" + result = pd.eval(ex, engine=engine, parser=parser) + expected = _eval_single_bin(lhs, arith1, rhs, engine) + + tm.assert_almost_equal(result, expected) + ex = f"lhs {arith1} rhs {arith1} rhs" + result = pd.eval(ex, engine=engine, parser=parser) + nlhs = _eval_single_bin(lhs, arith1, rhs, engine) + try: + nlhs, ghs = nlhs.align(rhs) + except (ValueError, TypeError, AttributeError): + # ValueError: series frame or frame series align + # TypeError, AttributeError: series or frame with scalar align + return + else: + if engine == "numexpr": + import numexpr as ne + + # direct numpy comparison + expected = ne.evaluate(f"nlhs {arith1} ghs") + # Update assert statement due to unreliable numerical + # precision component (GH37328) + # TODO: update testing code so that assert_almost_equal statement + # can be replaced again by the assert_numpy_array_equal statement + tm.assert_almost_equal(result.values, expected) + else: + expected = eval(f"nlhs {arith1} ghs") + tm.assert_almost_equal(result, expected) + + # modulus, pow, and floor division require special casing + + def test_modulus(self, lhs, rhs, engine, parser): + ex = r"lhs % rhs" + result = pd.eval(ex, engine=engine, parser=parser) + expected = lhs % rhs + tm.assert_almost_equal(result, expected) + + if engine == "numexpr": + import numexpr as ne + + expected = ne.evaluate(r"expected % rhs") + if isinstance(result, (DataFrame, Series)): + tm.assert_almost_equal(result.values, expected) + else: + tm.assert_almost_equal(result, expected.item()) + else: + expected = _eval_single_bin(expected, "%", rhs, engine) + tm.assert_almost_equal(result, expected) + + def test_floor_division(self, lhs, rhs, engine, parser): + ex = "lhs // rhs" + + if engine == "python" or ( + engine == "numexpr" and Version(numexpr.__version__) >= Version("2.13.0") + ): + res = pd.eval(ex, engine=engine, parser=parser) + expected = lhs // rhs + tm.assert_equal(res, expected) + else: + msg = ( + r"unsupported operand type\(s\) for //: 'VariableNode' and " + "'VariableNode'" + ) + with pytest.raises(TypeError, match=msg): + pd.eval( + ex, + local_dict={"lhs": lhs, "rhs": rhs}, + engine=engine, + parser=parser, + ) + + @td.skip_if_windows + def test_pow(self, lhs, rhs, engine, parser): + # odd failure on win32 platform, so skip + ex = "lhs ** rhs" + expected = _eval_single_bin(lhs, "**", rhs, engine) + result = pd.eval(ex, engine=engine, parser=parser) + + if ( + is_scalar(lhs) + and is_scalar(rhs) + and isinstance(expected, (complex, np.complexfloating)) + and np.isnan(result) + ): + msg = "(DataFrame.columns|numpy array) are different" + with pytest.raises(AssertionError, match=msg): + tm.assert_numpy_array_equal(result, expected) + else: + tm.assert_almost_equal(result, expected) + + ex = "(lhs ** rhs) ** rhs" + result = pd.eval(ex, engine=engine, parser=parser) + + middle = _eval_single_bin(lhs, "**", rhs, engine) + expected = _eval_single_bin(middle, "**", rhs, engine) + tm.assert_almost_equal(result, expected) + + def test_check_single_invert_op(self, lhs, engine, parser): + # simple + try: + elb = lhs.astype(bool) + except AttributeError: + elb = np.array([bool(lhs)]) + expected = ~elb + result = pd.eval("~elb", engine=engine, parser=parser) + tm.assert_almost_equal(expected, result) + + def test_frame_invert(self, engine, parser): + expr = "~lhs" + + # ~ ## + # frame + # float always raises + lhs = DataFrame(np.random.default_rng(2).standard_normal((5, 2))) + if engine == "numexpr": + msg = "couldn't find matching opcode for 'invert_dd'" + with pytest.raises(NotImplementedError, match=msg): + pd.eval(expr, engine=engine, parser=parser) + else: + msg = "ufunc 'invert' not supported for the input types" + with pytest.raises(TypeError, match=msg): + pd.eval(expr, engine=engine, parser=parser) + + # int raises on numexpr + lhs = DataFrame(np.random.default_rng(2).integers(5, size=(5, 2))) + if engine == "numexpr" and Version(numexpr.__version__) < Version("2.13.0"): + msg = "couldn't find matching opcode for 'invert" + with pytest.raises(NotImplementedError, match=msg): + pd.eval(expr, engine=engine, parser=parser) + else: + expect = ~lhs + result = pd.eval(expr, engine=engine, parser=parser) + tm.assert_frame_equal(expect, result) + + # bool always works + lhs = DataFrame(np.random.default_rng(2).standard_normal((5, 2)) > 0.5) + expect = ~lhs + result = pd.eval(expr, engine=engine, parser=parser) + tm.assert_frame_equal(expect, result) + + # object raises + lhs = DataFrame( + {"b": ["a", 1, 2.0], "c": np.random.default_rng(2).standard_normal(3) > 0.5} + ) + if engine == "numexpr": + with pytest.raises(ValueError, match="unknown type object"): + pd.eval(expr, engine=engine, parser=parser) + else: + msg = "bad operand type for unary ~: 'str'" + with pytest.raises(TypeError, match=msg): + pd.eval(expr, engine=engine, parser=parser) + + def test_series_invert(self, engine, parser): + # ~ #### + expr = "~lhs" + + # series + # float raises + lhs = Series(np.random.default_rng(2).standard_normal(5)) + if engine == "numexpr": + msg = "couldn't find matching opcode for 'invert_dd'" + with pytest.raises(NotImplementedError, match=msg): + result = pd.eval(expr, engine=engine, parser=parser) + else: + msg = "ufunc 'invert' not supported for the input types" + with pytest.raises(TypeError, match=msg): + pd.eval(expr, engine=engine, parser=parser) + + # int raises on numexpr + lhs = Series(np.random.default_rng(2).integers(5, size=5)) + if engine == "numexpr" and Version(numexpr.__version__) < Version("2.13.0"): + msg = "couldn't find matching opcode for 'invert" + with pytest.raises(NotImplementedError, match=msg): + pd.eval(expr, engine=engine, parser=parser) + else: + expect = ~lhs + result = pd.eval(expr, engine=engine, parser=parser) + tm.assert_series_equal(expect, result) + + # bool + lhs = Series(np.random.default_rng(2).standard_normal(5) > 0.5) + expect = ~lhs + result = pd.eval(expr, engine=engine, parser=parser) + tm.assert_series_equal(expect, result) + + # float + # int + # bool + + # object + lhs = Series(["a", 1, 2.0]) + if engine == "numexpr": + with pytest.raises(ValueError, match="unknown type object"): + pd.eval(expr, engine=engine, parser=parser) + else: + msg = "bad operand type for unary ~: 'str'" + with pytest.raises(TypeError, match=msg): + pd.eval(expr, engine=engine, parser=parser) + + def test_frame_negate(self, engine, parser): + expr = "-lhs" + + # float + lhs = DataFrame(np.random.default_rng(2).standard_normal((5, 2))) + expect = -lhs + result = pd.eval(expr, engine=engine, parser=parser) + tm.assert_frame_equal(expect, result) + + # int + lhs = DataFrame(np.random.default_rng(2).integers(5, size=(5, 2))) + expect = -lhs + result = pd.eval(expr, engine=engine, parser=parser) + tm.assert_frame_equal(expect, result) + + # bool doesn't work with numexpr but works elsewhere + lhs = DataFrame(np.random.default_rng(2).standard_normal((5, 2)) > 0.5) + if engine == "numexpr": + msg = "couldn't find matching opcode for 'neg_bb'" + with pytest.raises(NotImplementedError, match=msg): + pd.eval(expr, engine=engine, parser=parser) + else: + expect = -lhs + result = pd.eval(expr, engine=engine, parser=parser) + tm.assert_frame_equal(expect, result) + + def test_series_negate(self, engine, parser): + expr = "-lhs" + + # float + lhs = Series(np.random.default_rng(2).standard_normal(5)) + expect = -lhs + result = pd.eval(expr, engine=engine, parser=parser) + tm.assert_series_equal(expect, result) + + # int + lhs = Series(np.random.default_rng(2).integers(5, size=5)) + expect = -lhs + result = pd.eval(expr, engine=engine, parser=parser) + tm.assert_series_equal(expect, result) + + # bool doesn't work with numexpr but works elsewhere + lhs = Series(np.random.default_rng(2).standard_normal(5) > 0.5) + if engine == "numexpr": + msg = "couldn't find matching opcode for 'neg_bb'" + with pytest.raises(NotImplementedError, match=msg): + pd.eval(expr, engine=engine, parser=parser) + else: + expect = -lhs + result = pd.eval(expr, engine=engine, parser=parser) + tm.assert_series_equal(expect, result) + + @pytest.mark.parametrize( + "lhs", + [ + # Float + DataFrame(np.random.default_rng(2).standard_normal((5, 2))), + # Int + DataFrame(np.random.default_rng(2).integers(5, size=(5, 2))), + # bool doesn't work with numexpr but works elsewhere + DataFrame(np.random.default_rng(2).standard_normal((5, 2)) > 0.5), + ], + ) + def test_frame_pos(self, lhs, engine, parser): + expr = "+lhs" + expect = lhs + + result = pd.eval(expr, engine=engine, parser=parser) + tm.assert_frame_equal(expect, result) + + @pytest.mark.parametrize( + "lhs", + [ + # Float + Series(np.random.default_rng(2).standard_normal(5)), + # Int + Series(np.random.default_rng(2).integers(5, size=5)), + # bool doesn't work with numexpr but works elsewhere + Series(np.random.default_rng(2).standard_normal(5) > 0.5), + ], + ) + def test_series_pos(self, lhs, engine, parser): + expr = "+lhs" + expect = lhs + + result = pd.eval(expr, engine=engine, parser=parser) + tm.assert_series_equal(expect, result) + + def test_scalar_unary(self, engine, parser): + msg = "bad operand type for unary ~: 'float'" + warn = None + if PY312 and not (engine == "numexpr" and parser == "pandas"): + warn = DeprecationWarning + with pytest.raises(TypeError, match=msg): + pd.eval("~1.0", engine=engine, parser=parser) + + assert pd.eval("-1.0", parser=parser, engine=engine) == -1.0 + assert pd.eval("+1.0", parser=parser, engine=engine) == +1.0 + assert pd.eval("~1", parser=parser, engine=engine) == ~1 + assert pd.eval("-1", parser=parser, engine=engine) == -1 + assert pd.eval("+1", parser=parser, engine=engine) == +1 + with tm.assert_produces_warning( + warn, match="Bitwise inversion", check_stacklevel=False + ): + assert pd.eval("~True", parser=parser, engine=engine) == ~True + with tm.assert_produces_warning( + warn, match="Bitwise inversion", check_stacklevel=False + ): + assert pd.eval("~False", parser=parser, engine=engine) == ~False + assert pd.eval("-True", parser=parser, engine=engine) == -True + assert pd.eval("-False", parser=parser, engine=engine) == -False + assert pd.eval("+True", parser=parser, engine=engine) == +True + assert pd.eval("+False", parser=parser, engine=engine) == +False + + def test_unary_in_array(self): + # GH 11235 + # TODO: 2022-01-29: result return list with numexpr 2.7.3 in CI + # but cannot reproduce locally + result = np.array( + pd.eval("[-True, True, +True, -False, False, +False, -37, 37, ~37, +37]"), + dtype=np.object_, + ) + expected = np.array( + [ + -True, + True, + +True, + -False, + False, + +False, + -37, + 37, + ~37, + +37, + ], + dtype=np.object_, + ) + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize("expr", ["x < -0.1", "-5 > x"]) + def test_float_comparison_bin_op(self, float_numpy_dtype, expr): + # GH 16363 + df = DataFrame({"x": np.array([0], dtype=float_numpy_dtype)}) + res = df.eval(expr) + assert res.values == np.array([False]) + + def test_unary_in_function(self): + # GH 46471 + df = DataFrame({"x": [0, 1, np.nan]}) + + result = df.eval("x.fillna(-1)") + expected = df.x.fillna(-1) + # column name becomes None if using numexpr + # only check names when the engine is not numexpr + tm.assert_series_equal(result, expected, check_names=not USE_NUMEXPR) + + result = df.eval("x.shift(1, fill_value=-1)") + expected = df.x.shift(1, fill_value=-1) + tm.assert_series_equal(result, expected, check_names=not USE_NUMEXPR) + + @pytest.mark.parametrize( + "ex", + ( + "1 or 2", + "1 and 2", + "a and b", + "a or b", + "1 or 2 and (3 + 2) > 3", + "2 * x > 2 or 1 and 2", + "2 * df > 3 and 1 or a", + ), + ) + def test_disallow_scalar_bool_ops(self, ex, engine, parser): + x, a, b = np.random.default_rng(2).standard_normal(3), 1, 2 # noqa: F841 + df = DataFrame(np.random.default_rng(2).standard_normal((3, 2))) # noqa: F841 + + msg = "cannot evaluate scalar only bool ops|'BoolOp' nodes are not" + with pytest.raises(NotImplementedError, match=msg): + pd.eval(ex, engine=engine, parser=parser) + + def test_identical(self, engine, parser): + # see gh-10546 + x = 1 + result = pd.eval("x", engine=engine, parser=parser) + assert result == 1 + assert is_scalar(result) + + x = 1.5 + result = pd.eval("x", engine=engine, parser=parser) + assert result == 1.5 + assert is_scalar(result) + + x = False + result = pd.eval("x", engine=engine, parser=parser) + assert not result + assert is_bool(result) + assert is_scalar(result) + + x = np.array([1]) + result = pd.eval("x", engine=engine, parser=parser) + tm.assert_numpy_array_equal(result, np.array([1])) + assert result.shape == (1,) + + x = np.array([1.5]) + result = pd.eval("x", engine=engine, parser=parser) + tm.assert_numpy_array_equal(result, np.array([1.5])) + assert result.shape == (1,) + + x = np.array([False]) # noqa: F841 + result = pd.eval("x", engine=engine, parser=parser) + tm.assert_numpy_array_equal(result, np.array([False])) + assert result.shape == (1,) + + def test_line_continuation(self, engine, parser): + # GH 11149 + exp = """1 + 2 * \ + 5 - 1 + 2 """ + result = pd.eval(exp, engine=engine, parser=parser) + assert result == 12 + + def test_float_truncation(self, engine, parser): + # GH 14241 + exp = "1000000000.006" + result = pd.eval(exp, engine=engine, parser=parser) + expected = np.float64(exp) + assert result == expected + + df = DataFrame({"A": [1000000000.0009, 1000000000.0011, 1000000000.0015]}) + cutoff = 1000000000.0006 + result = df.query(f"A < {cutoff:.4f}") + assert result.empty + + cutoff = 1000000000.0010 + result = df.query(f"A > {cutoff:.4f}") + expected = df.loc[[1, 2], :] + tm.assert_frame_equal(expected, result) + + exact = 1000000000.0011 + result = df.query(f"A == {exact:.4f}") + expected = df.loc[[1], :] + tm.assert_frame_equal(expected, result) + + def test_disallow_python_keywords(self): + # GH 18221 + df = DataFrame([[0, 0, 0]], columns=["foo", "bar", "class"]) + msg = "Python keyword not valid identifier in numexpr query" + with pytest.raises(SyntaxError, match=msg): + df.query("class == 0") + + df = DataFrame() + df.index.name = "lambda" + with pytest.raises(SyntaxError, match=msg): + df.query("lambda == 0") + + def test_true_false_logic(self): + # GH 25823 + # This behavior is deprecated in Python 3.12 + with tm.maybe_produces_warning( + DeprecationWarning, PY312, check_stacklevel=False + ): + assert pd.eval("not True") == -2 + assert pd.eval("not False") == -1 + assert pd.eval("True and not True") == 0 + + def test_and_logic_string_match(self): + # GH 25823 + event = Series({"a": "hello"}) + assert pd.eval(f"{event.str.match('hello').a}") + assert pd.eval(f"{event.str.match('hello').a and event.str.match('hello').a}") + + +# ------------------------------------- +# gh-12388: Typecasting rules consistency with python + + +class TestTypeCasting: + @pytest.mark.parametrize("op", ["+", "-", "*", "**", "/"]) + # maybe someday... numexpr has too many upcasting rules now + # chain(*(np.core.sctypes[x] for x in ['uint', 'int', 'float'])) + @pytest.mark.parametrize("left_right", [("df", "3"), ("3", "df")]) + def test_binop_typecasting( + self, engine, parser, op, complex_or_float_dtype, left_right, request + ): + # GH#21374 + dtype = complex_or_float_dtype + df = DataFrame(np.random.default_rng(2).standard_normal((5, 3)), dtype=dtype) + left, right = left_right + s = f"{left} {op} {right}" + res = pd.eval(s, engine=engine, parser=parser) + if dtype == "complex64" and engine == "numexpr": + mark = pytest.mark.xfail( + reason="numexpr issue with complex that are upcast " + "to complex 128 " + "https://github.com/pydata/numexpr/issues/492" + ) + request.applymarker(mark) + assert df.values.dtype == dtype + assert res.values.dtype == dtype + tm.assert_frame_equal(res, eval(s), check_exact=False) + + +# ------------------------------------- +# Basic and complex alignment + + +def should_warn(*args): + not_mono = not any(map(operator.attrgetter("is_monotonic_increasing"), args)) + only_one_dt = reduce( + operator.xor, (issubclass(x.dtype.type, np.datetime64) for x in args) + ) + return not_mono and only_one_dt + + +class TestAlignment: + index_types = ["i", "s", "dt"] + lhs_index_types = index_types + ["s"] # 'p' + + def test_align_nested_unary_op(self, engine, parser): + s = "df * ~2" + df = DataFrame(np.random.default_rng(2).standard_normal((5, 3))) + res = pd.eval(s, engine=engine, parser=parser) + tm.assert_frame_equal(res, df * ~2) + + @pytest.mark.filterwarnings("always::RuntimeWarning") + @pytest.mark.parametrize("lr_idx_type", lhs_index_types) + @pytest.mark.parametrize("rr_idx_type", index_types) + @pytest.mark.parametrize("c_idx_type", index_types) + def test_basic_frame_alignment( + self, engine, parser, lr_idx_type, rr_idx_type, c_idx_type, idx_func_dict + ): + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 10)), + index=idx_func_dict[lr_idx_type](10), + columns=idx_func_dict[c_idx_type](10), + ) + df2 = DataFrame( + np.random.default_rng(2).standard_normal((20, 10)), + index=idx_func_dict[rr_idx_type](20), + columns=idx_func_dict[c_idx_type](10), + ) + # only warns if not monotonic and not sortable + if should_warn(df.index, df2.index): + with tm.assert_produces_warning(RuntimeWarning): + res = pd.eval("df + df2", engine=engine, parser=parser) + else: + res = pd.eval("df + df2", engine=engine, parser=parser) + tm.assert_frame_equal(res, df + df2) + + @pytest.mark.parametrize("r_idx_type", lhs_index_types) + @pytest.mark.parametrize("c_idx_type", lhs_index_types) + def test_frame_comparison( + self, engine, parser, r_idx_type, c_idx_type, idx_func_dict + ): + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 10)), + index=idx_func_dict[r_idx_type](10), + columns=idx_func_dict[c_idx_type](10), + ) + res = pd.eval("df < 2", engine=engine, parser=parser) + tm.assert_frame_equal(res, df < 2) + + df3 = DataFrame( + np.random.default_rng(2).standard_normal(df.shape), + index=df.index, + columns=df.columns, + ) + res = pd.eval("df < df3", engine=engine, parser=parser) + tm.assert_frame_equal(res, df < df3) + + @pytest.mark.filterwarnings("ignore::RuntimeWarning") + @pytest.mark.parametrize("r1", lhs_index_types) + @pytest.mark.parametrize("c1", index_types) + @pytest.mark.parametrize("r2", index_types) + @pytest.mark.parametrize("c2", index_types) + def test_medium_complex_frame_alignment( + self, engine, parser, r1, c1, r2, c2, idx_func_dict + ): + df = DataFrame( + np.random.default_rng(2).standard_normal((3, 2)), + index=idx_func_dict[r1](3), + columns=idx_func_dict[c1](2), + ) + df2 = DataFrame( + np.random.default_rng(2).standard_normal((4, 2)), + index=idx_func_dict[r2](4), + columns=idx_func_dict[c2](2), + ) + df3 = DataFrame( + np.random.default_rng(2).standard_normal((5, 2)), + index=idx_func_dict[r2](5), + columns=idx_func_dict[c2](2), + ) + if should_warn(df.index, df2.index, df3.index): + with tm.assert_produces_warning(RuntimeWarning): + res = pd.eval("df + df2 + df3", engine=engine, parser=parser) + else: + res = pd.eval("df + df2 + df3", engine=engine, parser=parser) + tm.assert_frame_equal(res, df + df2 + df3) + + @pytest.mark.filterwarnings("ignore::RuntimeWarning") + @pytest.mark.parametrize("index_name", ["index", "columns"]) + @pytest.mark.parametrize("c_idx_type", index_types) + @pytest.mark.parametrize("r_idx_type", lhs_index_types) + def test_basic_frame_series_alignment( + self, engine, parser, index_name, r_idx_type, c_idx_type, idx_func_dict + ): + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 10)), + index=idx_func_dict[r_idx_type](10), + columns=idx_func_dict[c_idx_type](10), + ) + index = getattr(df, index_name) + s = Series(np.random.default_rng(2).standard_normal(5), index[:5]) + + if should_warn(df.index, s.index): + with tm.assert_produces_warning(RuntimeWarning): + res = pd.eval("df + s", engine=engine, parser=parser) + else: + res = pd.eval("df + s", engine=engine, parser=parser) + + if r_idx_type == "dt" or c_idx_type == "dt": + expected = df.add(s) if engine == "numexpr" else df + s + else: + expected = df + s + tm.assert_frame_equal(res, expected) + + @pytest.mark.parametrize("index_name", ["index", "columns"]) + @pytest.mark.parametrize( + "r_idx_type, c_idx_type", + list(product(["i", "s"], ["i", "s"])) + [("dt", "dt")], + ) + @pytest.mark.filterwarnings("ignore::RuntimeWarning") + def test_basic_series_frame_alignment( + self, request, engine, parser, index_name, r_idx_type, c_idx_type, idx_func_dict + ): + if ( + engine == "numexpr" + and parser in ("pandas", "python") + and index_name == "index" + and r_idx_type == "i" + and c_idx_type == "s" + ): + reason = ( + f"Flaky column ordering when engine={engine}, " + f"parser={parser}, index_name={index_name}, " + f"r_idx_type={r_idx_type}, c_idx_type={c_idx_type}" + ) + request.applymarker(pytest.mark.xfail(reason=reason, strict=False)) + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 7)), + index=idx_func_dict[r_idx_type](10), + columns=idx_func_dict[c_idx_type](7), + ) + index = getattr(df, index_name) + s = Series(np.random.default_rng(2).standard_normal(5), index[:5]) + if should_warn(s.index, df.index): + with tm.assert_produces_warning(RuntimeWarning): + res = pd.eval("s + df", engine=engine, parser=parser) + else: + res = pd.eval("s + df", engine=engine, parser=parser) + + if r_idx_type == "dt" or c_idx_type == "dt": + expected = df.add(s) if engine == "numexpr" else s + df + else: + expected = s + df + tm.assert_frame_equal(res, expected) + + @pytest.mark.filterwarnings("ignore::RuntimeWarning") + @pytest.mark.parametrize("c_idx_type", index_types) + @pytest.mark.parametrize("r_idx_type", lhs_index_types) + @pytest.mark.parametrize("index_name", ["index", "columns"]) + @pytest.mark.parametrize("op", ["+", "*"]) + def test_series_frame_commutativity( + self, engine, parser, index_name, op, r_idx_type, c_idx_type, idx_func_dict + ): + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 10)), + index=idx_func_dict[r_idx_type](10), + columns=idx_func_dict[c_idx_type](10), + ) + index = getattr(df, index_name) + s = Series(np.random.default_rng(2).standard_normal(5), index[:5]) + + lhs = f"s {op} df" + rhs = f"df {op} s" + if should_warn(df.index, s.index): + with tm.assert_produces_warning(RuntimeWarning): + a = pd.eval(lhs, engine=engine, parser=parser) + with tm.assert_produces_warning(RuntimeWarning): + b = pd.eval(rhs, engine=engine, parser=parser) + else: + a = pd.eval(lhs, engine=engine, parser=parser) + b = pd.eval(rhs, engine=engine, parser=parser) + + if r_idx_type != "dt" and c_idx_type != "dt": + if engine == "numexpr": + tm.assert_frame_equal(a, b) + + @pytest.mark.filterwarnings("always::RuntimeWarning") + @pytest.mark.parametrize("r1", lhs_index_types) + @pytest.mark.parametrize("c1", index_types) + @pytest.mark.parametrize("r2", index_types) + @pytest.mark.parametrize("c2", index_types) + def test_complex_series_frame_alignment( + self, engine, parser, r1, c1, r2, c2, idx_func_dict + ): + n = 3 + m1 = 5 + m2 = 2 * m1 + df = DataFrame( + np.random.default_rng(2).standard_normal((m1, n)), + index=idx_func_dict[r1](m1), + columns=idx_func_dict[c1](n), + ) + df2 = DataFrame( + np.random.default_rng(2).standard_normal((m2, n)), + index=idx_func_dict[r2](m2), + columns=idx_func_dict[c2](n), + ) + index = df2.columns + ser = Series(np.random.default_rng(2).standard_normal(n), index[:n]) + + if r2 == "dt" or c2 == "dt": + if engine == "numexpr": + expected2 = df2.add(ser) + else: + expected2 = df2 + ser + else: + expected2 = df2 + ser + + if r1 == "dt" or c1 == "dt": + if engine == "numexpr": + expected = expected2.add(df) + else: + expected = expected2 + df + else: + expected = expected2 + df + + if should_warn(df2.index, ser.index, df.index): + with tm.assert_produces_warning(RuntimeWarning): + res = pd.eval("df2 + ser + df", engine=engine, parser=parser) + else: + res = pd.eval("df2 + ser + df", engine=engine, parser=parser) + assert res.shape == expected.shape + tm.assert_frame_equal(res, expected) + + def test_performance_warning_for_poor_alignment(self, engine, parser): + df = DataFrame(np.random.default_rng(2).standard_normal((1000, 10))) + s = Series(np.random.default_rng(2).standard_normal(10000)) + if engine == "numexpr": + seen = PerformanceWarning + else: + seen = False + + with tm.assert_produces_warning(seen): + pd.eval("df + s", engine=engine, parser=parser) + + s = Series(np.random.default_rng(2).standard_normal(1000)) + with tm.assert_produces_warning(False): + pd.eval("df + s", engine=engine, parser=parser) + + df = DataFrame(np.random.default_rng(2).standard_normal((10, 10000))) + s = Series(np.random.default_rng(2).standard_normal(10000)) + with tm.assert_produces_warning(False): + pd.eval("df + s", engine=engine, parser=parser) + + df = DataFrame(np.random.default_rng(2).standard_normal((10, 10))) + s = Series(np.random.default_rng(2).standard_normal(10000)) + + is_python_engine = engine == "python" + + if not is_python_engine: + wrn = PerformanceWarning + else: + wrn = False + + with tm.assert_produces_warning(wrn) as w: + pd.eval("df + s", engine=engine, parser=parser) + + if not is_python_engine: + assert len(w) == 1 + msg = str(w[0].message) + logged = np.log10(s.size - df.shape[1]) + expected = ( + f"Alignment difference on axis 1 is larger " + f"than an order of magnitude on term 'df', " + f"by more than {logged:.4g}; performance may suffer." + ) + assert msg == expected + + +# ------------------------------------ +# Slightly more complex ops + + +class TestOperations: + def eval(self, *args, **kwargs): + kwargs["level"] = kwargs.pop("level", 0) + 1 + return pd.eval(*args, **kwargs) + + def test_simple_arith_ops(self, engine, parser): + exclude_arith = [] + if parser == "python": + exclude_arith = ["in", "not in"] + + arith_ops = [ + op + for op in expr.ARITH_OPS_SYMS + expr.CMP_OPS_SYMS + if op not in exclude_arith + ] + + ops = (op for op in arith_ops if op != "//") + + for op in ops: + ex = f"1 {op} 1" + ex2 = f"x {op} 1" + ex3 = f"1 {op} (x + 1)" + + if op in ("in", "not in"): + msg = "argument of type 'int' is not iterable" + with pytest.raises(TypeError, match=msg): + pd.eval(ex, engine=engine, parser=parser) + else: + expec = _eval_single_bin(1, op, 1, engine) + x = self.eval(ex, engine=engine, parser=parser) + assert x == expec + + expec = _eval_single_bin(x, op, 1, engine) + y = self.eval(ex2, local_dict={"x": x}, engine=engine, parser=parser) + assert y == expec + + expec = _eval_single_bin(1, op, x + 1, engine) + y = self.eval(ex3, local_dict={"x": x}, engine=engine, parser=parser) + assert y == expec + + @pytest.mark.parametrize("rhs", [True, False]) + @pytest.mark.parametrize("lhs", [True, False]) + @pytest.mark.parametrize("op", expr.BOOL_OPS_SYMS) + def test_simple_bool_ops(self, rhs, lhs, op): + ex = f"{lhs} {op} {rhs}" + + if parser == "python" and op in ["and", "or"]: + msg = "'BoolOp' nodes are not implemented" + with pytest.raises(NotImplementedError, match=msg): + self.eval(ex) + return + + res = self.eval(ex) + exp = eval(ex) + assert res == exp + + @pytest.mark.parametrize("rhs", [True, False]) + @pytest.mark.parametrize("lhs", [True, False]) + @pytest.mark.parametrize("op", expr.BOOL_OPS_SYMS) + def test_bool_ops_with_constants(self, rhs, lhs, op): + ex = f"{lhs} {op} {rhs}" + + if parser == "python" and op in ["and", "or"]: + msg = "'BoolOp' nodes are not implemented" + with pytest.raises(NotImplementedError, match=msg): + self.eval(ex) + return + + res = self.eval(ex) + exp = eval(ex) + assert res == exp + + def test_4d_ndarray_fails(self): + x = np.random.default_rng(2).standard_normal((3, 4, 5, 6)) + y = Series(np.random.default_rng(2).standard_normal(10)) + msg = "N-dimensional objects, where N > 2, are not supported with eval" + with pytest.raises(NotImplementedError, match=msg): + self.eval("x + y", local_dict={"x": x, "y": y}) + + def test_constant(self): + x = self.eval("1") + assert x == 1 + + def test_single_variable(self): + df = DataFrame(np.random.default_rng(2).standard_normal((10, 2))) + df2 = self.eval("df", local_dict={"df": df}) + tm.assert_frame_equal(df, df2) + + def test_failing_subscript_with_name_error(self): + df = DataFrame(np.random.default_rng(2).standard_normal((5, 3))) # noqa: F841 + with pytest.raises(NameError, match="name 'x' is not defined"): + self.eval("df[x > 2] > 2") + + def test_lhs_expression_subscript(self): + df = DataFrame(np.random.default_rng(2).standard_normal((5, 3))) + result = self.eval("(df + 1)[df > 2]", local_dict={"df": df}) + expected = (df + 1)[df > 2] + tm.assert_frame_equal(result, expected) + + def test_attr_expression(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 3)), columns=list("abc") + ) + expr1 = "df.a < df.b" + expec1 = df.a < df.b + expr2 = "df.a + df.b + df.c" + expec2 = df.a + df.b + df.c + expr3 = "df.a + df.b + df.c[df.b < 0]" + expec3 = df.a + df.b + df.c[df.b < 0] + exprs = expr1, expr2, expr3 + expecs = expec1, expec2, expec3 + for e, expec in zip(exprs, expecs): + tm.assert_series_equal(expec, self.eval(e, local_dict={"df": df})) + + def test_assignment_fails(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 3)), columns=list("abc") + ) + df2 = DataFrame(np.random.default_rng(2).standard_normal((5, 3))) + expr1 = "df = df2" + msg = "cannot assign without a target object" + with pytest.raises(ValueError, match=msg): + self.eval(expr1, local_dict={"df": df, "df2": df2}) + + def test_assignment_column_multiple_raise(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 2)), columns=list("ab") + ) + # multiple assignees + with pytest.raises(SyntaxError, match="invalid syntax"): + df.eval("d c = a + b") + + def test_assignment_column_invalid_assign(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 2)), columns=list("ab") + ) + # invalid assignees + msg = "left hand side of an assignment must be a single name" + with pytest.raises(SyntaxError, match=msg): + df.eval("d,c = a + b") + + def test_assignment_column_invalid_assign_function_call(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 2)), columns=list("ab") + ) + msg = "cannot assign to function call" + with pytest.raises(SyntaxError, match=msg): + df.eval('Timestamp("20131001") = a + b') + + def test_assignment_single_assign_existing(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 2)), columns=list("ab") + ) + # single assignment - existing variable + expected = df.copy() + expected["a"] = expected["a"] + expected["b"] + df.eval("a = a + b", inplace=True) + tm.assert_frame_equal(df, expected) + + def test_assignment_single_assign_new(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 2)), columns=list("ab") + ) + # single assignment - new variable + expected = df.copy() + expected["c"] = expected["a"] + expected["b"] + df.eval("c = a + b", inplace=True) + tm.assert_frame_equal(df, expected) + + def test_assignment_single_assign_local_overlap(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 2)), columns=list("ab") + ) + df = df.copy() + a = 1 # noqa: F841 + df.eval("a = 1 + b", inplace=True) + + expected = df.copy() + expected["a"] = 1 + expected["b"] + tm.assert_frame_equal(df, expected) + + def test_assignment_single_assign_name(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 2)), columns=list("ab") + ) + + a = 1 # noqa: F841 + old_a = df.a.copy() + df.eval("a = a + b", inplace=True) + result = old_a + df.b + tm.assert_series_equal(result, df.a, check_names=False) + assert result.name is None + + def test_assignment_multiple_raises(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 2)), columns=list("ab") + ) + # multiple assignment + df.eval("c = a + b", inplace=True) + msg = "can only assign a single expression" + with pytest.raises(SyntaxError, match=msg): + df.eval("c = a = b") + + def test_assignment_explicit(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 2)), columns=list("ab") + ) + # explicit targets + self.eval("c = df.a + df.b", local_dict={"df": df}, target=df, inplace=True) + expected = df.copy() + expected["c"] = expected["a"] + expected["b"] + tm.assert_frame_equal(df, expected) + + def test_column_in(self): + # GH 11235 + df = DataFrame({"a": [11], "b": [-32]}) + result = df.eval("a in [11, -32]") + expected = Series([True]) + # TODO: 2022-01-29: Name check failed with numexpr 2.7.3 in CI + # but cannot reproduce locally + tm.assert_series_equal(result, expected, check_names=False) + + @pytest.mark.xfail(reason="Unknown: Omitted test_ in name prior.") + def test_assignment_not_inplace(self): + # see gh-9297 + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 2)), columns=list("ab") + ) + + actual = df.eval("c = a + b", inplace=False) + assert actual is not None + + expected = df.copy() + expected["c"] = expected["a"] + expected["b"] + tm.assert_frame_equal(df, expected) + + def test_multi_line_expression(self, warn_copy_on_write): + # GH 11149 + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + expected = df.copy() + + expected["c"] = expected["a"] + expected["b"] + expected["d"] = expected["c"] + expected["b"] + answer = df.eval( + """ + c = a + b + d = c + b""", + inplace=True, + ) + tm.assert_frame_equal(expected, df) + assert answer is None + + expected["a"] = expected["a"] - 1 + expected["e"] = expected["a"] + 2 + answer = df.eval( + """ + a = a - 1 + e = a + 2""", + inplace=True, + ) + tm.assert_frame_equal(expected, df) + assert answer is None + + # multi-line not valid if not all assignments + msg = "Multi-line expressions are only valid if all expressions contain" + with pytest.raises(ValueError, match=msg): + df.eval( + """ + a = b + 2 + b - 2""", + inplace=False, + ) + + def test_multi_line_expression_not_inplace(self): + # GH 11149 + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + expected = df.copy() + + expected["c"] = expected["a"] + expected["b"] + expected["d"] = expected["c"] + expected["b"] + df = df.eval( + """ + c = a + b + d = c + b""", + inplace=False, + ) + tm.assert_frame_equal(expected, df) + + expected["a"] = expected["a"] - 1 + expected["e"] = expected["a"] + 2 + df = df.eval( + """ + a = a - 1 + e = a + 2""", + inplace=False, + ) + tm.assert_frame_equal(expected, df) + + def test_multi_line_expression_local_variable(self): + # GH 15342 + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + expected = df.copy() + + local_var = 7 + expected["c"] = expected["a"] * local_var + expected["d"] = expected["c"] + local_var + answer = df.eval( + """ + c = a * @local_var + d = c + @local_var + """, + inplace=True, + ) + tm.assert_frame_equal(expected, df) + assert answer is None + + def test_multi_line_expression_callable_local_variable(self): + # 26426 + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + + def local_func(a, b): + return b + + expected = df.copy() + expected["c"] = expected["a"] * local_func(1, 7) + expected["d"] = expected["c"] + local_func(1, 7) + answer = df.eval( + """ + c = a * @local_func(1, 7) + d = c + @local_func(1, 7) + """, + inplace=True, + ) + tm.assert_frame_equal(expected, df) + assert answer is None + + def test_multi_line_expression_callable_local_variable_with_kwargs(self): + # 26426 + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + + def local_func(a, b): + return b + + expected = df.copy() + expected["c"] = expected["a"] * local_func(b=7, a=1) + expected["d"] = expected["c"] + local_func(b=7, a=1) + answer = df.eval( + """ + c = a * @local_func(b=7, a=1) + d = c + @local_func(b=7, a=1) + """, + inplace=True, + ) + tm.assert_frame_equal(expected, df) + assert answer is None + + def test_assignment_in_query(self): + # GH 8664 + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + df_orig = df.copy() + msg = "cannot assign without a target object" + with pytest.raises(ValueError, match=msg): + df.query("a = 1") + tm.assert_frame_equal(df, df_orig) + + def test_query_inplace(self): + # see gh-11149 + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + expected = df.copy() + expected = expected[expected["a"] == 2] + df.query("a == 2", inplace=True) + tm.assert_frame_equal(expected, df) + + df = {} + expected = {"a": 3} + + self.eval("a = 1 + 2", target=df, inplace=True) + tm.assert_dict_equal(df, expected) + + @pytest.mark.parametrize("invalid_target", [1, "cat", [1, 2], np.array([]), (1, 3)]) + def test_cannot_item_assign(self, invalid_target): + msg = "Cannot assign expression output to target" + expression = "a = 1 + 2" + + with pytest.raises(ValueError, match=msg): + self.eval(expression, target=invalid_target, inplace=True) + + if hasattr(invalid_target, "copy"): + with pytest.raises(ValueError, match=msg): + self.eval(expression, target=invalid_target, inplace=False) + + @pytest.mark.parametrize("invalid_target", [1, "cat", (1, 3)]) + def test_cannot_copy_item(self, invalid_target): + msg = "Cannot return a copy of the target" + expression = "a = 1 + 2" + + with pytest.raises(ValueError, match=msg): + self.eval(expression, target=invalid_target, inplace=False) + + @pytest.mark.parametrize("target", [1, "cat", [1, 2], np.array([]), (1, 3), {1: 2}]) + def test_inplace_no_assignment(self, target): + expression = "1 + 2" + + assert self.eval(expression, target=target, inplace=False) == 3 + + msg = "Cannot operate inplace if there is no assignment" + with pytest.raises(ValueError, match=msg): + self.eval(expression, target=target, inplace=True) + + def test_basic_period_index_boolean_expression(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((2, 2)), + columns=period_range("2020-01-01", freq="D", periods=2), + ) + e = df < 2 + r = self.eval("df < 2", local_dict={"df": df}) + x = df < 2 + + tm.assert_frame_equal(r, e) + tm.assert_frame_equal(x, e) + + def test_basic_period_index_subscript_expression(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((2, 2)), + columns=period_range("2020-01-01", freq="D", periods=2), + ) + r = self.eval("df[df < 2 + 3]", local_dict={"df": df}) + e = df[df < 2 + 3] + tm.assert_frame_equal(r, e) + + def test_nested_period_index_subscript_expression(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((2, 2)), + columns=period_range("2020-01-01", freq="D", periods=2), + ) + r = self.eval("df[df[df < 2] < 2] + df * 2", local_dict={"df": df}) + e = df[df[df < 2] < 2] + df * 2 + tm.assert_frame_equal(r, e) + + def test_date_boolean(self, engine, parser): + df = DataFrame(np.random.default_rng(2).standard_normal((5, 3))) + df["dates1"] = date_range("1/1/2012", periods=5) + res = self.eval( + "df.dates1 < 20130101", + local_dict={"df": df}, + engine=engine, + parser=parser, + ) + expec = df.dates1 < "20130101" + tm.assert_series_equal(res, expec, check_names=False) + + def test_simple_in_ops(self, engine, parser): + if parser != "python": + res = pd.eval("1 in [1, 2]", engine=engine, parser=parser) + assert res + + res = pd.eval("2 in (1, 2)", engine=engine, parser=parser) + assert res + + res = pd.eval("3 in (1, 2)", engine=engine, parser=parser) + assert not res + + res = pd.eval("3 not in (1, 2)", engine=engine, parser=parser) + assert res + + res = pd.eval("[3] not in (1, 2)", engine=engine, parser=parser) + assert res + + res = pd.eval("[3] in ([3], 2)", engine=engine, parser=parser) + assert res + + res = pd.eval("[[3]] in [[[3]], 2]", engine=engine, parser=parser) + assert res + + res = pd.eval("(3,) in [(3,), 2]", engine=engine, parser=parser) + assert res + + res = pd.eval("(3,) not in [(3,), 2]", engine=engine, parser=parser) + assert not res + + res = pd.eval("[(3,)] in [[(3,)], 2]", engine=engine, parser=parser) + assert res + else: + msg = "'In' nodes are not implemented" + with pytest.raises(NotImplementedError, match=msg): + pd.eval("1 in [1, 2]", engine=engine, parser=parser) + with pytest.raises(NotImplementedError, match=msg): + pd.eval("2 in (1, 2)", engine=engine, parser=parser) + with pytest.raises(NotImplementedError, match=msg): + pd.eval("3 in (1, 2)", engine=engine, parser=parser) + with pytest.raises(NotImplementedError, match=msg): + pd.eval("[(3,)] in (1, 2, [(3,)])", engine=engine, parser=parser) + msg = "'NotIn' nodes are not implemented" + with pytest.raises(NotImplementedError, match=msg): + pd.eval("3 not in (1, 2)", engine=engine, parser=parser) + with pytest.raises(NotImplementedError, match=msg): + pd.eval("[3] not in (1, 2, [[3]])", engine=engine, parser=parser) + + def test_check_many_exprs(self, engine, parser): + a = 1 # noqa: F841 + expr = " * ".join("a" * 33) + expected = 1 + res = pd.eval(expr, engine=engine, parser=parser) + assert res == expected + + @pytest.mark.parametrize( + "expr", + [ + "df > 2 and df > 3", + "df > 2 or df > 3", + "not df > 2", + ], + ) + def test_fails_and_or_not(self, expr, engine, parser): + df = DataFrame(np.random.default_rng(2).standard_normal((5, 3))) + if parser == "python": + msg = "'BoolOp' nodes are not implemented" + if "not" in expr: + msg = "'Not' nodes are not implemented" + + with pytest.raises(NotImplementedError, match=msg): + pd.eval( + expr, + local_dict={"df": df}, + parser=parser, + engine=engine, + ) + else: + # smoke-test, should not raise + pd.eval( + expr, + local_dict={"df": df}, + parser=parser, + engine=engine, + ) + + @pytest.mark.parametrize("char", ["|", "&"]) + def test_fails_ampersand_pipe(self, char, engine, parser): + df = DataFrame(np.random.default_rng(2).standard_normal((5, 3))) # noqa: F841 + ex = f"(df + 2)[df > 1] > 0 {char} (df > 0)" + if parser == "python": + msg = "cannot evaluate scalar only bool ops" + with pytest.raises(NotImplementedError, match=msg): + pd.eval(ex, parser=parser, engine=engine) + else: + # smoke-test, should not raise + pd.eval(ex, parser=parser, engine=engine) + + +class TestMath: + def eval(self, *args, **kwargs): + kwargs["level"] = kwargs.pop("level", 0) + 1 + return pd.eval(*args, **kwargs) + + @pytest.mark.skipif( + not NUMEXPR_INSTALLED, reason="Unary ops only implemented for numexpr" + ) + @pytest.mark.parametrize("fn", _unary_math_ops) + def test_unary_functions(self, fn): + df = DataFrame({"a": np.random.default_rng(2).standard_normal(10)}) + a = df.a + + expr = f"{fn}(a)" + got = self.eval(expr) + with np.errstate(all="ignore"): + expect = getattr(np, fn)(a) + tm.assert_series_equal(got, expect, check_names=False) + + @pytest.mark.parametrize("fn", _binary_math_ops) + def test_binary_functions(self, fn): + df = DataFrame( + { + "a": np.random.default_rng(2).standard_normal(10), + "b": np.random.default_rng(2).standard_normal(10), + } + ) + a = df.a + b = df.b + + expr = f"{fn}(a, b)" + got = self.eval(expr) + with np.errstate(all="ignore"): + expect = getattr(np, fn)(a, b) + tm.assert_almost_equal(got, expect, check_names=False) + + def test_df_use_case(self, engine, parser): + df = DataFrame( + { + "a": np.random.default_rng(2).standard_normal(10), + "b": np.random.default_rng(2).standard_normal(10), + } + ) + df.eval( + "e = arctan2(sin(a), b)", + engine=engine, + parser=parser, + inplace=True, + ) + got = df.e + expect = np.arctan2(np.sin(df.a), df.b) + tm.assert_series_equal(got, expect, check_names=False) + + def test_df_arithmetic_subexpression(self, engine, parser): + df = DataFrame( + { + "a": np.random.default_rng(2).standard_normal(10), + "b": np.random.default_rng(2).standard_normal(10), + } + ) + df.eval("e = sin(a + b)", engine=engine, parser=parser, inplace=True) + got = df.e + expect = np.sin(df.a + df.b) + tm.assert_series_equal(got, expect, check_names=False) + + @pytest.mark.parametrize( + "dtype, expect_dtype", + [ + (np.int32, np.float64), + (np.int64, np.float64), + (np.float32, np.float32), + (np.float64, np.float64), + pytest.param(np.complex128, np.complex128, marks=td.skip_if_windows), + ], + ) + def test_result_types(self, dtype, expect_dtype, engine, parser): + # xref https://github.com/pandas-dev/pandas/issues/12293 + # this fails on Windows, apparently a floating point precision issue + + # Did not test complex64 because DataFrame is converting it to + # complex128. Due to https://github.com/pandas-dev/pandas/issues/10952 + df = DataFrame( + {"a": np.random.default_rng(2).standard_normal(10).astype(dtype)} + ) + assert df.a.dtype == dtype + df.eval("b = sin(a)", engine=engine, parser=parser, inplace=True) + got = df.b + expect = np.sin(df.a) + assert expect.dtype == got.dtype + assert expect_dtype == got.dtype + tm.assert_series_equal(got, expect, check_names=False) + + def test_undefined_func(self, engine, parser): + df = DataFrame({"a": np.random.default_rng(2).standard_normal(10)}) + msg = '"mysin" is not a supported function' + + with pytest.raises(ValueError, match=msg): + df.eval("mysin(a)", engine=engine, parser=parser) + + def test_keyword_arg(self, engine, parser): + df = DataFrame({"a": np.random.default_rng(2).standard_normal(10)}) + msg = 'Function "sin" does not support keyword arguments' + + with pytest.raises(TypeError, match=msg): + df.eval("sin(x=a)", engine=engine, parser=parser) + + +_var_s = np.random.default_rng(2).standard_normal(10) + + +class TestScope: + def test_global_scope(self, engine, parser): + e = "_var_s * 2" + tm.assert_numpy_array_equal( + _var_s * 2, pd.eval(e, engine=engine, parser=parser) + ) + + def test_no_new_locals(self, engine, parser): + x = 1 + lcls = locals().copy() + pd.eval("x + 1", local_dict=lcls, engine=engine, parser=parser) + lcls2 = locals().copy() + lcls2.pop("lcls") + assert lcls == lcls2 + + def test_no_new_globals(self, engine, parser): + x = 1 # noqa: F841 + gbls = globals().copy() + pd.eval("x + 1", engine=engine, parser=parser) + gbls2 = globals().copy() + assert gbls == gbls2 + + def test_empty_locals(self, engine, parser): + # GH 47084 + x = 1 # noqa: F841 + msg = "name 'x' is not defined" + with pytest.raises(UndefinedVariableError, match=msg): + pd.eval("x + 1", engine=engine, parser=parser, local_dict={}) + + def test_empty_globals(self, engine, parser): + # GH 47084 + msg = "name '_var_s' is not defined" + e = "_var_s * 2" + with pytest.raises(UndefinedVariableError, match=msg): + pd.eval(e, engine=engine, parser=parser, global_dict={}) + + +@td.skip_if_no("numexpr") +def test_invalid_engine(): + msg = "Invalid engine 'asdf' passed" + with pytest.raises(KeyError, match=msg): + pd.eval("x + y", local_dict={"x": 1, "y": 2}, engine="asdf") + + +@td.skip_if_no("numexpr") +@pytest.mark.parametrize( + ("use_numexpr", "expected"), + ( + (True, "numexpr"), + (False, "python"), + ), +) +def test_numexpr_option_respected(use_numexpr, expected): + # GH 32556 + from pandas.core.computation.eval import _check_engine + + with pd.option_context("compute.use_numexpr", use_numexpr): + result = _check_engine(None) + assert result == expected + + +@td.skip_if_no("numexpr") +def test_numexpr_option_incompatible_op(): + # GH 32556 + with pd.option_context("compute.use_numexpr", False): + df = DataFrame( + {"A": [True, False, True, False, None, None], "B": [1, 2, 3, 4, 5, 6]} + ) + result = df.query("A.isnull()") + expected = DataFrame({"A": [None, None], "B": [5, 6]}, index=[4, 5]) + tm.assert_frame_equal(result, expected) + + +@td.skip_if_no("numexpr") +def test_invalid_parser(): + msg = "Invalid parser 'asdf' passed" + with pytest.raises(KeyError, match=msg): + pd.eval("x + y", local_dict={"x": 1, "y": 2}, parser="asdf") + + +_parsers: dict[str, type[BaseExprVisitor]] = { + "python": PythonExprVisitor, + "pytables": pytables.PyTablesExprVisitor, + "pandas": PandasExprVisitor, +} + + +@pytest.mark.parametrize("engine", ENGINES) +@pytest.mark.parametrize("parser", _parsers) +def test_disallowed_nodes(engine, parser): + VisitorClass = _parsers[parser] + inst = VisitorClass("x + 1", engine, parser) + + for ops in VisitorClass.unsupported_nodes: + msg = "nodes are not implemented" + with pytest.raises(NotImplementedError, match=msg): + getattr(inst, ops)() + + +def test_syntax_error_exprs(engine, parser): + e = "s +" + with pytest.raises(SyntaxError, match="invalid syntax"): + pd.eval(e, engine=engine, parser=parser) + + +def test_name_error_exprs(engine, parser): + e = "s + t" + msg = "name 's' is not defined" + with pytest.raises(NameError, match=msg): + pd.eval(e, engine=engine, parser=parser) + + +@pytest.mark.parametrize("express", ["a + @b", "@a + b", "@a + @b"]) +def test_invalid_local_variable_reference(engine, parser, express): + a, b = 1, 2 # noqa: F841 + + if parser != "pandas": + with pytest.raises(SyntaxError, match="The '@' prefix is only"): + pd.eval(express, engine=engine, parser=parser) + else: + with pytest.raises(SyntaxError, match="The '@' prefix is not"): + pd.eval(express, engine=engine, parser=parser) + + +def test_numexpr_builtin_raises(engine, parser): + sin, dotted_line = 1, 2 + if engine == "numexpr": + msg = "Variables in expression .+" + with pytest.raises(NumExprClobberingError, match=msg): + pd.eval("sin + dotted_line", engine=engine, parser=parser) + else: + res = pd.eval("sin + dotted_line", engine=engine, parser=parser) + assert res == sin + dotted_line + + +def test_bad_resolver_raises(engine, parser): + cannot_resolve = 42, 3.0 + with pytest.raises(TypeError, match="Resolver of type .+"): + pd.eval("1 + 2", resolvers=cannot_resolve, engine=engine, parser=parser) + + +def test_empty_string_raises(engine, parser): + # GH 13139 + with pytest.raises(ValueError, match="expr cannot be an empty string"): + pd.eval("", engine=engine, parser=parser) + + +def test_more_than_one_expression_raises(engine, parser): + with pytest.raises(SyntaxError, match="only a single expression is allowed"): + pd.eval("1 + 1; 2 + 2", engine=engine, parser=parser) + + +@pytest.mark.parametrize("cmp", ("and", "or")) +@pytest.mark.parametrize("lhs", (int, float)) +@pytest.mark.parametrize("rhs", (int, float)) +def test_bool_ops_fails_on_scalars(lhs, cmp, rhs, engine, parser): + gen = { + int: lambda: np.random.default_rng(2).integers(10), + float: np.random.default_rng(2).standard_normal, + } + + mid = gen[lhs]() # noqa: F841 + lhs = gen[lhs]() + rhs = gen[rhs]() + + ex1 = f"lhs {cmp} mid {cmp} rhs" + ex2 = f"lhs {cmp} mid and mid {cmp} rhs" + ex3 = f"(lhs {cmp} mid) & (mid {cmp} rhs)" + for ex in (ex1, ex2, ex3): + msg = "cannot evaluate scalar only bool ops|'BoolOp' nodes are not" + with pytest.raises(NotImplementedError, match=msg): + pd.eval(ex, engine=engine, parser=parser) + + +@pytest.mark.parametrize( + "other", + [ + "'x'", + "...", + ], +) +def test_equals_various(other): + df = DataFrame({"A": ["a", "b", "c"]}, dtype=object) + result = df.eval(f"A == {other}") + expected = Series([False, False, False], name="A") + if USE_NUMEXPR: + # https://github.com/pandas-dev/pandas/issues/10239 + # lose name with numexpr engine. Remove when that's fixed. + expected.name = None + tm.assert_series_equal(result, expected) + + +def test_inf(engine, parser): + s = "inf + 1" + expected = np.inf + result = pd.eval(s, engine=engine, parser=parser) + assert result == expected + + +@pytest.mark.parametrize("column", ["Temp(°C)", "Capacitance(μF)"]) +def test_query_token(engine, column): + # See: https://github.com/pandas-dev/pandas/pull/42826 + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 2)), columns=[column, "b"] + ) + expected = df[df[column] > 5] + query_string = f"`{column}` > 5" + result = df.query(query_string, engine=engine) + tm.assert_frame_equal(result, expected) + + +def test_negate_lt_eq_le(engine, parser): + df = DataFrame([[0, 10], [1, 20]], columns=["cat", "count"]) + expected = df[~(df.cat > 0)] + + result = df.query("~(cat > 0)", engine=engine, parser=parser) + tm.assert_frame_equal(result, expected) + + if parser == "python": + msg = "'Not' nodes are not implemented" + with pytest.raises(NotImplementedError, match=msg): + df.query("not (cat > 0)", engine=engine, parser=parser) + else: + result = df.query("not (cat > 0)", engine=engine, parser=parser) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "column", + DEFAULT_GLOBALS.keys(), +) +def test_eval_no_support_column_name(request, column): + # GH 44603 + if column in ["True", "False", "inf", "Inf"]: + request.applymarker( + pytest.mark.xfail( + raises=KeyError, + reason=f"GH 47859 DataFrame eval not supported with {column}", + ) + ) + + df = DataFrame( + np.random.default_rng(2).integers(0, 100, size=(10, 2)), + columns=[column, "col1"], + ) + expected = df[df[column] > 6] + result = df.query(f"{column}>6") + + tm.assert_frame_equal(result, expected) + + +def test_set_inplace(using_copy_on_write, warn_copy_on_write): + # https://github.com/pandas-dev/pandas/issues/47449 + # Ensure we don't only update the DataFrame inplace, but also the actual + # column values, such that references to this column also get updated + df = DataFrame({"A": [1, 2, 3], "B": [4, 5, 6], "C": [7, 8, 9]}) + result_view = df[:] + ser = df["A"] + with tm.assert_cow_warning(warn_copy_on_write): + df.eval("A = B + C", inplace=True) + expected = DataFrame({"A": [11, 13, 15], "B": [4, 5, 6], "C": [7, 8, 9]}) + tm.assert_frame_equal(df, expected) + if not using_copy_on_write: + tm.assert_series_equal(ser, expected["A"]) + tm.assert_series_equal(result_view["A"], expected["A"]) + else: + expected = Series([1, 2, 3], name="A") + tm.assert_series_equal(ser, expected) + tm.assert_series_equal(result_view["A"], expected) + + +class TestValidate: + @pytest.mark.parametrize("value", [1, "True", [1, 2, 3], 5.0]) + def test_validate_bool_args(self, value): + msg = 'For argument "inplace" expected type bool, received type' + with pytest.raises(ValueError, match=msg): + pd.eval("2+2", inplace=value) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/config/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/config/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/config/test_config.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/config/test_config.py new file mode 100644 index 0000000000000000000000000000000000000000..f49ae942423992f6dbb209e8f931f091e900ba12 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/config/test_config.py @@ -0,0 +1,437 @@ +import pytest + +from pandas._config import config as cf +from pandas._config.config import OptionError + +import pandas as pd +import pandas._testing as tm + + +class TestConfig: + @pytest.fixture(autouse=True) + def clean_config(self, monkeypatch): + with monkeypatch.context() as m: + m.setattr(cf, "_global_config", {}) + m.setattr(cf, "options", cf.DictWrapper(cf._global_config)) + m.setattr(cf, "_deprecated_options", {}) + m.setattr(cf, "_registered_options", {}) + + # Our test fixture in conftest.py sets "chained_assignment" + # to "raise" only after all test methods have been setup. + # However, after this setup, there is no longer any + # "chained_assignment" option, so re-register it. + cf.register_option("chained_assignment", "raise") + yield + + def test_api(self): + # the pandas object exposes the user API + assert hasattr(pd, "get_option") + assert hasattr(pd, "set_option") + assert hasattr(pd, "reset_option") + assert hasattr(pd, "describe_option") + + def test_is_one_of_factory(self): + v = cf.is_one_of_factory([None, 12]) + + v(12) + v(None) + msg = r"Value must be one of None\|12" + with pytest.raises(ValueError, match=msg): + v(1.1) + + def test_register_option(self): + cf.register_option("a", 1, "doc") + + # can't register an already registered option + msg = "Option 'a' has already been registered" + with pytest.raises(OptionError, match=msg): + cf.register_option("a", 1, "doc") + + # can't register an already registered option + msg = "Path prefix to option 'a' is already an option" + with pytest.raises(OptionError, match=msg): + cf.register_option("a.b.c.d1", 1, "doc") + with pytest.raises(OptionError, match=msg): + cf.register_option("a.b.c.d2", 1, "doc") + + # no python keywords + msg = "for is a python keyword" + with pytest.raises(ValueError, match=msg): + cf.register_option("for", 0) + with pytest.raises(ValueError, match=msg): + cf.register_option("a.for.b", 0) + # must be valid identifier (ensure attribute access works) + msg = "oh my goddess! is not a valid identifier" + with pytest.raises(ValueError, match=msg): + cf.register_option("Oh my Goddess!", 0) + + # we can register options several levels deep + # without predefining the intermediate steps + # and we can define differently named options + # in the same namespace + cf.register_option("k.b.c.d1", 1, "doc") + cf.register_option("k.b.c.d2", 1, "doc") + + def test_describe_option(self): + cf.register_option("a", 1, "doc") + cf.register_option("b", 1, "doc2") + cf.deprecate_option("b") + + cf.register_option("c.d.e1", 1, "doc3") + cf.register_option("c.d.e2", 1, "doc4") + cf.register_option("f", 1) + cf.register_option("g.h", 1) + cf.register_option("k", 2) + cf.deprecate_option("g.h", rkey="k") + cf.register_option("l", "foo") + + # non-existent keys raise KeyError + msg = r"No such keys\(s\)" + with pytest.raises(OptionError, match=msg): + cf.describe_option("no.such.key") + + # we can get the description for any key we registered + assert "doc" in cf.describe_option("a", _print_desc=False) + assert "doc2" in cf.describe_option("b", _print_desc=False) + assert "precated" in cf.describe_option("b", _print_desc=False) + assert "doc3" in cf.describe_option("c.d.e1", _print_desc=False) + assert "doc4" in cf.describe_option("c.d.e2", _print_desc=False) + + # if no doc is specified we get a default message + # saying "description not available" + assert "available" in cf.describe_option("f", _print_desc=False) + assert "available" in cf.describe_option("g.h", _print_desc=False) + assert "precated" in cf.describe_option("g.h", _print_desc=False) + assert "k" in cf.describe_option("g.h", _print_desc=False) + + # default is reported + assert "foo" in cf.describe_option("l", _print_desc=False) + # current value is reported + assert "bar" not in cf.describe_option("l", _print_desc=False) + cf.set_option("l", "bar") + assert "bar" in cf.describe_option("l", _print_desc=False) + + def test_case_insensitive(self): + cf.register_option("KanBAN", 1, "doc") + + assert "doc" in cf.describe_option("kanbaN", _print_desc=False) + assert cf.get_option("kanBaN") == 1 + cf.set_option("KanBan", 2) + assert cf.get_option("kAnBaN") == 2 + + # gets of non-existent keys fail + msg = r"No such keys\(s\): 'no_such_option'" + with pytest.raises(OptionError, match=msg): + cf.get_option("no_such_option") + cf.deprecate_option("KanBan") + + assert cf._is_deprecated("kAnBaN") + + def test_get_option(self): + cf.register_option("a", 1, "doc") + cf.register_option("b.c", "hullo", "doc2") + cf.register_option("b.b", None, "doc2") + + # gets of existing keys succeed + assert cf.get_option("a") == 1 + assert cf.get_option("b.c") == "hullo" + assert cf.get_option("b.b") is None + + # gets of non-existent keys fail + msg = r"No such keys\(s\): 'no_such_option'" + with pytest.raises(OptionError, match=msg): + cf.get_option("no_such_option") + + def test_set_option(self): + cf.register_option("a", 1, "doc") + cf.register_option("b.c", "hullo", "doc2") + cf.register_option("b.b", None, "doc2") + + assert cf.get_option("a") == 1 + assert cf.get_option("b.c") == "hullo" + assert cf.get_option("b.b") is None + + cf.set_option("a", 2) + cf.set_option("b.c", "wurld") + cf.set_option("b.b", 1.1) + + assert cf.get_option("a") == 2 + assert cf.get_option("b.c") == "wurld" + assert cf.get_option("b.b") == 1.1 + + msg = r"No such keys\(s\): 'no.such.key'" + with pytest.raises(OptionError, match=msg): + cf.set_option("no.such.key", None) + + def test_set_option_empty_args(self): + msg = "Must provide an even number of non-keyword arguments" + with pytest.raises(ValueError, match=msg): + cf.set_option() + + def test_set_option_uneven_args(self): + msg = "Must provide an even number of non-keyword arguments" + with pytest.raises(ValueError, match=msg): + cf.set_option("a.b", 2, "b.c") + + def test_set_option_invalid_single_argument_type(self): + msg = "Must provide an even number of non-keyword arguments" + with pytest.raises(ValueError, match=msg): + cf.set_option(2) + + def test_set_option_multiple(self): + cf.register_option("a", 1, "doc") + cf.register_option("b.c", "hullo", "doc2") + cf.register_option("b.b", None, "doc2") + + assert cf.get_option("a") == 1 + assert cf.get_option("b.c") == "hullo" + assert cf.get_option("b.b") is None + + cf.set_option("a", "2", "b.c", None, "b.b", 10.0) + + assert cf.get_option("a") == "2" + assert cf.get_option("b.c") is None + assert cf.get_option("b.b") == 10.0 + + def test_validation(self): + cf.register_option("a", 1, "doc", validator=cf.is_int) + cf.register_option("d", 1, "doc", validator=cf.is_nonnegative_int) + cf.register_option("b.c", "hullo", "doc2", validator=cf.is_text) + + msg = "Value must have type ''" + with pytest.raises(ValueError, match=msg): + cf.register_option("a.b.c.d2", "NO", "doc", validator=cf.is_int) + + cf.set_option("a", 2) # int is_int + cf.set_option("b.c", "wurld") # str is_str + cf.set_option("d", 2) + cf.set_option("d", None) # non-negative int can be None + + # None not is_int + with pytest.raises(ValueError, match=msg): + cf.set_option("a", None) + with pytest.raises(ValueError, match=msg): + cf.set_option("a", "ab") + + msg = "Value must be a nonnegative integer or None" + with pytest.raises(ValueError, match=msg): + cf.register_option("a.b.c.d3", "NO", "doc", validator=cf.is_nonnegative_int) + with pytest.raises(ValueError, match=msg): + cf.register_option("a.b.c.d3", -2, "doc", validator=cf.is_nonnegative_int) + + msg = r"Value must be an instance of \|" + with pytest.raises(ValueError, match=msg): + cf.set_option("b.c", 1) + + validator = cf.is_one_of_factory([None, cf.is_callable]) + cf.register_option("b", lambda: None, "doc", validator=validator) + # pylint: disable-next=consider-using-f-string + cf.set_option("b", "%.1f".format) # Formatter is callable + cf.set_option("b", None) # Formatter is none (default) + with pytest.raises(ValueError, match="Value must be a callable"): + cf.set_option("b", "%.1f") + + def test_reset_option(self): + cf.register_option("a", 1, "doc", validator=cf.is_int) + cf.register_option("b.c", "hullo", "doc2", validator=cf.is_str) + assert cf.get_option("a") == 1 + assert cf.get_option("b.c") == "hullo" + + cf.set_option("a", 2) + cf.set_option("b.c", "wurld") + assert cf.get_option("a") == 2 + assert cf.get_option("b.c") == "wurld" + + cf.reset_option("a") + assert cf.get_option("a") == 1 + assert cf.get_option("b.c") == "wurld" + cf.reset_option("b.c") + assert cf.get_option("a") == 1 + assert cf.get_option("b.c") == "hullo" + + def test_reset_option_all(self): + cf.register_option("a", 1, "doc", validator=cf.is_int) + cf.register_option("b.c", "hullo", "doc2", validator=cf.is_str) + assert cf.get_option("a") == 1 + assert cf.get_option("b.c") == "hullo" + + cf.set_option("a", 2) + cf.set_option("b.c", "wurld") + assert cf.get_option("a") == 2 + assert cf.get_option("b.c") == "wurld" + + cf.reset_option("all") + assert cf.get_option("a") == 1 + assert cf.get_option("b.c") == "hullo" + + def test_deprecate_option(self): + # we can deprecate non-existent options + cf.deprecate_option("foo") + + assert cf._is_deprecated("foo") + with tm.assert_produces_warning(FutureWarning, match="deprecated"): + with pytest.raises(KeyError, match="No such keys.s.: 'foo'"): + cf.get_option("foo") + + cf.register_option("a", 1, "doc", validator=cf.is_int) + cf.register_option("b.c", "hullo", "doc2") + cf.register_option("foo", "hullo", "doc2") + + cf.deprecate_option("a", removal_ver="nifty_ver") + with tm.assert_produces_warning(FutureWarning, match="eprecated.*nifty_ver"): + cf.get_option("a") + + msg = "Option 'a' has already been defined as deprecated" + with pytest.raises(OptionError, match=msg): + cf.deprecate_option("a") + + cf.deprecate_option("b.c", "zounds!") + with tm.assert_produces_warning(FutureWarning, match="zounds!"): + cf.get_option("b.c") + + # test rerouting keys + cf.register_option("d.a", "foo", "doc2") + cf.register_option("d.dep", "bar", "doc2") + assert cf.get_option("d.a") == "foo" + assert cf.get_option("d.dep") == "bar" + + cf.deprecate_option("d.dep", rkey="d.a") # reroute d.dep to d.a + with tm.assert_produces_warning(FutureWarning, match="eprecated"): + assert cf.get_option("d.dep") == "foo" + + with tm.assert_produces_warning(FutureWarning, match="eprecated"): + cf.set_option("d.dep", "baz") # should overwrite "d.a" + + with tm.assert_produces_warning(FutureWarning, match="eprecated"): + assert cf.get_option("d.dep") == "baz" + + def test_config_prefix(self): + with cf.config_prefix("base"): + cf.register_option("a", 1, "doc1") + cf.register_option("b", 2, "doc2") + assert cf.get_option("a") == 1 + assert cf.get_option("b") == 2 + + cf.set_option("a", 3) + cf.set_option("b", 4) + assert cf.get_option("a") == 3 + assert cf.get_option("b") == 4 + + assert cf.get_option("base.a") == 3 + assert cf.get_option("base.b") == 4 + assert "doc1" in cf.describe_option("base.a", _print_desc=False) + assert "doc2" in cf.describe_option("base.b", _print_desc=False) + + cf.reset_option("base.a") + cf.reset_option("base.b") + + with cf.config_prefix("base"): + assert cf.get_option("a") == 1 + assert cf.get_option("b") == 2 + + def test_callback(self): + k = [None] + v = [None] + + def callback(key): + k.append(key) + v.append(cf.get_option(key)) + + cf.register_option("d.a", "foo", cb=callback) + cf.register_option("d.b", "foo", cb=callback) + + del k[-1], v[-1] + cf.set_option("d.a", "fooz") + assert k[-1] == "d.a" + assert v[-1] == "fooz" + + del k[-1], v[-1] + cf.set_option("d.b", "boo") + assert k[-1] == "d.b" + assert v[-1] == "boo" + + del k[-1], v[-1] + cf.reset_option("d.b") + assert k[-1] == "d.b" + + def test_set_ContextManager(self): + def eq(val): + assert cf.get_option("a") == val + + cf.register_option("a", 0) + eq(0) + with cf.option_context("a", 15): + eq(15) + with cf.option_context("a", 25): + eq(25) + eq(15) + eq(0) + + cf.set_option("a", 17) + eq(17) + + # Test that option_context can be used as a decorator too (#34253). + @cf.option_context("a", 123) + def f(): + eq(123) + + f() + + def test_attribute_access(self): + holder = [] + + def f3(key): + holder.append(True) + + cf.register_option("a", 0) + cf.register_option("c", 0, cb=f3) + options = cf.options + + assert options.a == 0 + with cf.option_context("a", 15): + assert options.a == 15 + + options.a = 500 + assert cf.get_option("a") == 500 + + cf.reset_option("a") + assert options.a == cf.get_option("a", 0) + + msg = "You can only set the value of existing options" + with pytest.raises(OptionError, match=msg): + options.b = 1 + with pytest.raises(OptionError, match=msg): + options.display = 1 + + # make sure callback kicks when using this form of setting + options.c = 1 + assert len(holder) == 1 + + def test_option_context_scope(self): + # Ensure that creating a context does not affect the existing + # environment as it is supposed to be used with the `with` statement. + # See https://github.com/pandas-dev/pandas/issues/8514 + + original_value = 60 + context_value = 10 + option_name = "a" + + cf.register_option(option_name, original_value) + + # Ensure creating contexts didn't affect the current context. + ctx = cf.option_context(option_name, context_value) + assert cf.get_option(option_name) == original_value + + # Ensure the correct value is available inside the context. + with ctx: + assert cf.get_option(option_name) == context_value + + # Ensure the current context is reset + assert cf.get_option(option_name) == original_value + + def test_dictwrapper_getattr(self): + options = cf.options + # GH 19789 + with pytest.raises(OptionError, match="No such option"): + options.bananas + assert not hasattr(options, "bananas") diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/config/test_localization.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/config/test_localization.py new file mode 100644 index 0000000000000000000000000000000000000000..3907f557d1075536e46d12f219dc9b0c3f3f32c1 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/config/test_localization.py @@ -0,0 +1,156 @@ +import codecs +import locale +import os + +import pytest + +from pandas._config.localization import ( + can_set_locale, + get_locales, + set_locale, +) + +from pandas.compat import ISMUSL + +import pandas as pd + +_all_locales = get_locales() +_current_locale = locale.setlocale(locale.LC_ALL) # getlocale() is wrong, see GH#46595 + +# Don't run any of these tests if we have no locales. +pytestmark = pytest.mark.skipif(not _all_locales, reason="Need locales") + +_skip_if_only_one_locale = pytest.mark.skipif( + len(_all_locales) <= 1, reason="Need multiple locales for meaningful test" +) + + +def _get_current_locale(lc_var: int = locale.LC_ALL) -> str: + # getlocale is not always compliant with setlocale, use setlocale. GH#46595 + return locale.setlocale(lc_var) + + +@pytest.mark.parametrize("lc_var", (locale.LC_ALL, locale.LC_CTYPE, locale.LC_TIME)) +def test_can_set_current_locale(lc_var): + # Can set the current locale + before_locale = _get_current_locale(lc_var) + assert can_set_locale(before_locale, lc_var=lc_var) + after_locale = _get_current_locale(lc_var) + assert before_locale == after_locale + + +@pytest.mark.parametrize("lc_var", (locale.LC_ALL, locale.LC_CTYPE, locale.LC_TIME)) +def test_can_set_locale_valid_set(lc_var): + # Can set the default locale. + before_locale = _get_current_locale(lc_var) + assert can_set_locale("", lc_var=lc_var) + after_locale = _get_current_locale(lc_var) + assert before_locale == after_locale + + +@pytest.mark.parametrize( + "lc_var", + ( + locale.LC_ALL, + locale.LC_CTYPE, + pytest.param( + locale.LC_TIME, + marks=pytest.mark.skipif( + ISMUSL, reason="MUSL allows setting invalid LC_TIME." + ), + ), + ), +) +def test_can_set_locale_invalid_set(lc_var): + # Cannot set an invalid locale. + before_locale = _get_current_locale(lc_var) + assert not can_set_locale("non-existent_locale", lc_var=lc_var) + after_locale = _get_current_locale(lc_var) + assert before_locale == after_locale + + +@pytest.mark.parametrize( + "lang,enc", + [ + ("it_CH", "UTF-8"), + ("en_US", "ascii"), + ("zh_CN", "GB2312"), + ("it_IT", "ISO-8859-1"), + ], +) +@pytest.mark.parametrize("lc_var", (locale.LC_ALL, locale.LC_CTYPE, locale.LC_TIME)) +def test_can_set_locale_no_leak(lang, enc, lc_var): + # Test that can_set_locale does not leak even when returning False. See GH#46595 + before_locale = _get_current_locale(lc_var) + can_set_locale((lang, enc), locale.LC_ALL) + after_locale = _get_current_locale(lc_var) + assert before_locale == after_locale + + +def test_can_set_locale_invalid_get(monkeypatch): + # see GH#22129 + # In some cases, an invalid locale can be set, + # but a subsequent getlocale() raises a ValueError. + + def mock_get_locale(): + raise ValueError() + + with monkeypatch.context() as m: + m.setattr(locale, "getlocale", mock_get_locale) + assert not can_set_locale("") + + +def test_get_locales_at_least_one(): + # see GH#9744 + assert len(_all_locales) > 0 + + +@_skip_if_only_one_locale +def test_get_locales_prefix(): + first_locale = _all_locales[0] + assert len(get_locales(prefix=first_locale[:2])) > 0 + + +@_skip_if_only_one_locale +@pytest.mark.parametrize( + "lang,enc", + [ + ("it_CH", "UTF-8"), + ("en_US", "ascii"), + ("zh_CN", "GB2312"), + ("it_IT", "ISO-8859-1"), + ], +) +def test_set_locale(lang, enc): + before_locale = _get_current_locale() + + enc = codecs.lookup(enc).name + new_locale = lang, enc + + if not can_set_locale(new_locale): + msg = "unsupported locale setting" + + with pytest.raises(locale.Error, match=msg): + with set_locale(new_locale): + pass + else: + with set_locale(new_locale) as normalized_locale: + new_lang, new_enc = normalized_locale.split(".") + new_enc = codecs.lookup(enc).name + + normalized_locale = new_lang, new_enc + assert normalized_locale == new_locale + + # Once we exit the "with" statement, locale should be back to what it was. + after_locale = _get_current_locale() + assert before_locale == after_locale + + +def test_encoding_detected(): + system_locale = os.environ.get("LC_ALL") + system_encoding = system_locale.split(".")[-1] if system_locale else "utf-8" + + assert ( + codecs.lookup(pd.options.display.encoding).name + == codecs.lookup(system_encoding).name + ) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/construction/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/construction/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/construction/test_extract_array.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/construction/test_extract_array.py new file mode 100644 index 0000000000000000000000000000000000000000..4dd3eda8c995ce022e9d46b907323e79bcd679f8 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/construction/test_extract_array.py @@ -0,0 +1,18 @@ +from pandas import Index +import pandas._testing as tm +from pandas.core.construction import extract_array + + +def test_extract_array_rangeindex(): + ri = Index(range(5)) + + expected = ri._values + res = extract_array(ri, extract_numpy=True, extract_range=True) + tm.assert_numpy_array_equal(res, expected) + res = extract_array(ri, extract_numpy=False, extract_range=True) + tm.assert_numpy_array_equal(res, expected) + + res = extract_array(ri, extract_numpy=True, extract_range=False) + tm.assert_index_equal(res, ri) + res = extract_array(ri, extract_numpy=False, extract_range=False) + tm.assert_index_equal(res, ri) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/index/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/index/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/index/test_datetimeindex.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/index/test_datetimeindex.py new file mode 100644 index 0000000000000000000000000000000000000000..b023297c9549d88f6e1c493e50f148a74f26cea6 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/index/test_datetimeindex.py @@ -0,0 +1,69 @@ +import pytest + +from pandas import ( + DatetimeIndex, + Series, + Timestamp, + date_range, +) +import pandas._testing as tm + +pytestmark = pytest.mark.filterwarnings( + "ignore:Setting a value on a view:FutureWarning" +) + + +@pytest.mark.parametrize( + "cons", + [ + lambda x: DatetimeIndex(x), + lambda x: DatetimeIndex(DatetimeIndex(x)), + ], +) +def test_datetimeindex(using_copy_on_write, cons): + dt = date_range("2019-12-31", periods=3, freq="D") + ser = Series(dt) + idx = cons(ser) + expected = idx.copy(deep=True) + ser.iloc[0] = Timestamp("2020-12-31") + if using_copy_on_write: + tm.assert_index_equal(idx, expected) + + +def test_datetimeindex_tz_convert(using_copy_on_write): + dt = date_range("2019-12-31", periods=3, freq="D", tz="Europe/Berlin") + ser = Series(dt) + idx = DatetimeIndex(ser).tz_convert("US/Eastern") + expected = idx.copy(deep=True) + ser.iloc[0] = Timestamp("2020-12-31", tz="Europe/Berlin") + if using_copy_on_write: + tm.assert_index_equal(idx, expected) + + +def test_datetimeindex_tz_localize(using_copy_on_write): + dt = date_range("2019-12-31", periods=3, freq="D") + ser = Series(dt) + idx = DatetimeIndex(ser).tz_localize("Europe/Berlin") + expected = idx.copy(deep=True) + ser.iloc[0] = Timestamp("2020-12-31") + if using_copy_on_write: + tm.assert_index_equal(idx, expected) + + +def test_datetimeindex_isocalendar(using_copy_on_write): + dt = date_range("2019-12-31", periods=3, freq="D") + ser = Series(dt) + df = DatetimeIndex(ser).isocalendar() + expected = df.index.copy(deep=True) + ser.iloc[0] = Timestamp("2020-12-31") + if using_copy_on_write: + tm.assert_index_equal(df.index, expected) + + +def test_index_values(using_copy_on_write): + idx = date_range("2019-12-31", periods=3, freq="D") + result = idx.values + if using_copy_on_write: + assert result.flags.writeable is False + else: + assert result.flags.writeable is True diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/index/test_index.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/index/test_index.py new file mode 100644 index 0000000000000000000000000000000000000000..49d756cf32d34306fbb4eb3525f1c5b70d5f155c --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/index/test_index.py @@ -0,0 +1,184 @@ +import numpy as np +import pytest + +from pandas import ( + DataFrame, + Index, + Series, +) +import pandas._testing as tm +from pandas.tests.copy_view.util import get_array + + +def index_view(index_data=[1, 2]): + df = DataFrame({"a": index_data, "b": 1.5}) + view = df[:] + df = df.set_index("a", drop=True) + idx = df.index + # df = None + return idx, view + + +def test_set_index_update_column(using_copy_on_write, warn_copy_on_write): + df = DataFrame({"a": [1, 2], "b": 1}) + df = df.set_index("a", drop=False) + expected = df.index.copy(deep=True) + with tm.assert_cow_warning(warn_copy_on_write): + df.iloc[0, 0] = 100 + if using_copy_on_write: + tm.assert_index_equal(df.index, expected) + else: + tm.assert_index_equal(df.index, Index([100, 2], name="a")) + + +def test_set_index_drop_update_column(using_copy_on_write): + df = DataFrame({"a": [1, 2], "b": 1.5}) + view = df[:] + df = df.set_index("a", drop=True) + expected = df.index.copy(deep=True) + view.iloc[0, 0] = 100 + tm.assert_index_equal(df.index, expected) + + +def test_set_index_series(using_copy_on_write, warn_copy_on_write): + df = DataFrame({"a": [1, 2], "b": 1.5}) + ser = Series([10, 11]) + df = df.set_index(ser) + expected = df.index.copy(deep=True) + with tm.assert_cow_warning(warn_copy_on_write): + ser.iloc[0] = 100 + if using_copy_on_write: + tm.assert_index_equal(df.index, expected) + else: + tm.assert_index_equal(df.index, Index([100, 11])) + + +def test_assign_index_as_series(using_copy_on_write, warn_copy_on_write): + df = DataFrame({"a": [1, 2], "b": 1.5}) + ser = Series([10, 11]) + df.index = ser + expected = df.index.copy(deep=True) + with tm.assert_cow_warning(warn_copy_on_write): + ser.iloc[0] = 100 + if using_copy_on_write: + tm.assert_index_equal(df.index, expected) + else: + tm.assert_index_equal(df.index, Index([100, 11])) + + +def test_assign_index_as_index(using_copy_on_write, warn_copy_on_write): + df = DataFrame({"a": [1, 2], "b": 1.5}) + ser = Series([10, 11]) + rhs_index = Index(ser) + df.index = rhs_index + rhs_index = None # overwrite to clear reference + expected = df.index.copy(deep=True) + with tm.assert_cow_warning(warn_copy_on_write): + ser.iloc[0] = 100 + if using_copy_on_write: + tm.assert_index_equal(df.index, expected) + else: + tm.assert_index_equal(df.index, Index([100, 11])) + + +def test_index_from_series(using_copy_on_write, warn_copy_on_write): + ser = Series([1, 2]) + idx = Index(ser) + expected = idx.copy(deep=True) + with tm.assert_cow_warning(warn_copy_on_write): + ser.iloc[0] = 100 + if using_copy_on_write: + tm.assert_index_equal(idx, expected) + else: + tm.assert_index_equal(idx, Index([100, 2])) + + +def test_index_from_series_copy(using_copy_on_write): + ser = Series([1, 2]) + idx = Index(ser, copy=True) # noqa: F841 + arr = get_array(ser) + ser.iloc[0] = 100 + assert np.shares_memory(get_array(ser), arr) + + +def test_index_from_index(using_copy_on_write, warn_copy_on_write): + ser = Series([1, 2]) + idx = Index(ser) + idx = Index(idx) + expected = idx.copy(deep=True) + with tm.assert_cow_warning(warn_copy_on_write): + ser.iloc[0] = 100 + if using_copy_on_write: + tm.assert_index_equal(idx, expected) + else: + tm.assert_index_equal(idx, Index([100, 2])) + + +@pytest.mark.parametrize( + "func", + [ + lambda x: x._shallow_copy(x._values), + lambda x: x.view(), + lambda x: x.take([0, 1]), + lambda x: x.repeat([1, 1]), + lambda x: x[slice(0, 2)], + lambda x: x[[0, 1]], + lambda x: x._getitem_slice(slice(0, 2)), + lambda x: x.delete([]), + lambda x: x.rename("b"), + lambda x: x.astype("Int64", copy=False), + ], + ids=[ + "_shallow_copy", + "view", + "take", + "repeat", + "getitem_slice", + "getitem_list", + "_getitem_slice", + "delete", + "rename", + "astype", + ], +) +def test_index_ops(using_copy_on_write, func, request): + idx, view_ = index_view() + expected = idx.copy(deep=True) + if "astype" in request.node.callspec.id: + expected = expected.astype("Int64") + idx = func(idx) + view_.iloc[0, 0] = 100 + if using_copy_on_write: + tm.assert_index_equal(idx, expected, check_names=False) + + +def test_infer_objects(using_copy_on_write): + idx, view_ = index_view(["a", "b"]) + expected = idx.copy(deep=True) + idx = idx.infer_objects(copy=False) + view_.iloc[0, 0] = "aaaa" + if using_copy_on_write: + tm.assert_index_equal(idx, expected, check_names=False) + + +def test_index_to_frame(using_copy_on_write): + idx = Index([1, 2, 3], name="a") + expected = idx.copy(deep=True) + df = idx.to_frame() + if using_copy_on_write: + assert np.shares_memory(get_array(df, "a"), idx._values) + assert not df._mgr._has_no_reference(0) + else: + assert not np.shares_memory(get_array(df, "a"), idx._values) + + df.iloc[0, 0] = 100 + tm.assert_index_equal(idx, expected) + + +def test_index_values(using_copy_on_write): + idx = Index([1, 2, 3]) + result = idx.values + if using_copy_on_write: + assert result.flags.writeable is False + else: + assert result.flags.writeable is True diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/index/test_periodindex.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/index/test_periodindex.py new file mode 100644 index 0000000000000000000000000000000000000000..b80ce1d3d838fc0f517089d452221ac19363a9b8 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/index/test_periodindex.py @@ -0,0 +1,30 @@ +import pytest + +from pandas import ( + Period, + PeriodIndex, + Series, + period_range, +) +import pandas._testing as tm + +pytestmark = pytest.mark.filterwarnings( + "ignore:Setting a value on a view:FutureWarning" +) + + +@pytest.mark.parametrize( + "cons", + [ + lambda x: PeriodIndex(x), + lambda x: PeriodIndex(PeriodIndex(x)), + ], +) +def test_periodindex(using_copy_on_write, cons): + dt = period_range("2019-12-31", periods=3, freq="D") + ser = Series(dt) + idx = cons(ser) + expected = idx.copy(deep=True) + ser.iloc[0] = Period("2020-12-31") + if using_copy_on_write: + tm.assert_index_equal(idx, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/index/test_timedeltaindex.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/index/test_timedeltaindex.py new file mode 100644 index 0000000000000000000000000000000000000000..5b9832093fded0f48c523bdbc363d043a871eb60 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/index/test_timedeltaindex.py @@ -0,0 +1,30 @@ +import pytest + +from pandas import ( + Series, + Timedelta, + TimedeltaIndex, + timedelta_range, +) +import pandas._testing as tm + +pytestmark = pytest.mark.filterwarnings( + "ignore:Setting a value on a view:FutureWarning" +) + + +@pytest.mark.parametrize( + "cons", + [ + lambda x: TimedeltaIndex(x), + lambda x: TimedeltaIndex(TimedeltaIndex(x)), + ], +) +def test_timedeltaindex(using_copy_on_write, cons): + dt = timedelta_range("1 day", periods=3) + ser = Series(dt) + idx = cons(ser) + expected = idx.copy(deep=True) + ser.iloc[0] = Timedelta("5 days") + if using_copy_on_write: + tm.assert_index_equal(idx, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_array.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_array.py new file mode 100644 index 0000000000000000000000000000000000000000..0dabec6014b0dfff04874ab67f0c7bd830dad3f3 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_array.py @@ -0,0 +1,218 @@ +import numpy as np +import pytest + +from pandas.compat.numpy import np_version_gt2 + +from pandas import ( + DataFrame, + Series, + date_range, +) +import pandas._testing as tm +from pandas.tests.copy_view.util import get_array + +# ----------------------------------------------------------------------------- +# Copy/view behaviour for accessing underlying array of Series/DataFrame + + +@pytest.mark.parametrize( + "method", + [ + lambda ser: ser.values, + lambda ser: np.asarray(ser), + lambda ser: np.array(ser, copy=False), + ], + ids=["values", "asarray", "array"], +) +def test_series_values(using_copy_on_write, method): + ser = Series([1, 2, 3], name="name") + ser_orig = ser.copy() + + arr = method(ser) + + if using_copy_on_write: + # .values still gives a view but is read-only + assert np.shares_memory(arr, get_array(ser, "name")) + assert arr.flags.writeable is False + + # mutating series through arr therefore doesn't work + with pytest.raises(ValueError, match="read-only"): + arr[0] = 0 + tm.assert_series_equal(ser, ser_orig) + + # mutating the series itself still works + ser.iloc[0] = 0 + assert ser.values[0] == 0 + else: + assert arr.flags.writeable is True + arr[0] = 0 + assert ser.iloc[0] == 0 + + +@pytest.mark.parametrize( + "method", + [ + lambda df: df.values, + lambda df: np.asarray(df), + lambda ser: np.array(ser, copy=False), + ], + ids=["values", "asarray", "array"], +) +def test_dataframe_values(using_copy_on_write, using_array_manager, method): + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + df_orig = df.copy() + + arr = method(df) + + if using_copy_on_write: + # .values still gives a view but is read-only + assert np.shares_memory(arr, get_array(df, "a")) + assert arr.flags.writeable is False + + # mutating series through arr therefore doesn't work + with pytest.raises(ValueError, match="read-only"): + arr[0, 0] = 0 + tm.assert_frame_equal(df, df_orig) + + # mutating the series itself still works + df.iloc[0, 0] = 0 + assert df.values[0, 0] == 0 + else: + assert arr.flags.writeable is True + arr[0, 0] = 0 + if not using_array_manager: + assert df.iloc[0, 0] == 0 + else: + tm.assert_frame_equal(df, df_orig) + + +def test_series_to_numpy(using_copy_on_write): + ser = Series([1, 2, 3], name="name") + ser_orig = ser.copy() + + # default: copy=False, no dtype or NAs + arr = ser.to_numpy() + if using_copy_on_write: + # to_numpy still gives a view but is read-only + assert np.shares_memory(arr, get_array(ser, "name")) + assert arr.flags.writeable is False + + # mutating series through arr therefore doesn't work + with pytest.raises(ValueError, match="read-only"): + arr[0] = 0 + tm.assert_series_equal(ser, ser_orig) + + # mutating the series itself still works + ser.iloc[0] = 0 + assert ser.values[0] == 0 + else: + assert arr.flags.writeable is True + arr[0] = 0 + assert ser.iloc[0] == 0 + + # specify copy=True gives a writeable array + ser = Series([1, 2, 3], name="name") + arr = ser.to_numpy(copy=True) + assert not np.shares_memory(arr, get_array(ser, "name")) + assert arr.flags.writeable is True + + # specifying a dtype that already causes a copy also gives a writeable array + ser = Series([1, 2, 3], name="name") + arr = ser.to_numpy(dtype="float64") + assert not np.shares_memory(arr, get_array(ser, "name")) + assert arr.flags.writeable is True + + +@pytest.mark.parametrize("order", ["F", "C"]) +def test_ravel_read_only(using_copy_on_write, order): + ser = Series([1, 2, 3]) + with tm.assert_produces_warning(FutureWarning, match="is deprecated"): + arr = ser.ravel(order=order) + if using_copy_on_write: + assert arr.flags.writeable is False + assert np.shares_memory(get_array(ser), arr) + + +def test_series_array_ea_dtypes(using_copy_on_write): + ser = Series([1, 2, 3], dtype="Int64") + arr = np.asarray(ser, dtype="int64") + assert np.shares_memory(arr, get_array(ser)) + if using_copy_on_write: + assert arr.flags.writeable is False + else: + assert arr.flags.writeable is True + + arr = np.asarray(ser) + assert np.shares_memory(arr, get_array(ser)) + if using_copy_on_write: + assert arr.flags.writeable is False + else: + assert arr.flags.writeable is True + + +def test_dataframe_array_ea_dtypes(using_copy_on_write): + df = DataFrame({"a": [1, 2, 3]}, dtype="Int64") + arr = np.asarray(df, dtype="int64") + assert np.shares_memory(arr, get_array(df, "a")) + if using_copy_on_write: + assert arr.flags.writeable is False + else: + assert arr.flags.writeable is True + + arr = np.asarray(df) + assert np.shares_memory(arr, get_array(df, "a")) + if using_copy_on_write: + assert arr.flags.writeable is False + else: + assert arr.flags.writeable is True + + +def test_dataframe_array_string_dtype(using_copy_on_write, using_array_manager): + df = DataFrame({"a": ["a", "b"]}, dtype="string") + arr = np.asarray(df) + if not using_array_manager: + assert np.shares_memory(arr, get_array(df, "a")) + if using_copy_on_write: + assert arr.flags.writeable is False + else: + assert arr.flags.writeable is True + + +def test_dataframe_multiple_numpy_dtypes(): + df = DataFrame({"a": [1, 2, 3], "b": 1.5}) + arr = np.asarray(df) + assert not np.shares_memory(arr, get_array(df, "a")) + assert arr.flags.writeable is True + + if np_version_gt2: + # copy=False semantics are only supported in NumPy>=2. + + msg = "Starting with NumPy 2.0, the behavior of the 'copy' keyword has changed" + with pytest.raises(FutureWarning, match=msg): + arr = np.array(df, copy=False) + + arr = np.array(df, copy=True) + assert arr.flags.writeable is True + + +def test_dataframe_single_block_copy_true(): + # the copy=False/None cases are tested above in test_dataframe_values + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + arr = np.array(df, copy=True) + assert not np.shares_memory(arr, get_array(df, "a")) + assert arr.flags.writeable is True + + +def test_values_is_ea(using_copy_on_write): + df = DataFrame({"a": date_range("2012-01-01", periods=3)}) + arr = np.asarray(df) + if using_copy_on_write: + assert arr.flags.writeable is False + else: + assert arr.flags.writeable is True + + +def test_empty_dataframe(): + df = DataFrame() + arr = np.asarray(df) + assert arr.flags.writeable is True diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_astype.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_astype.py new file mode 100644 index 0000000000000000000000000000000000000000..45fc3333c49a7722db200985d8232b9470baa205 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_astype.py @@ -0,0 +1,287 @@ +import pickle + +import numpy as np +import pytest + +from pandas.compat import HAS_PYARROW +from pandas.compat.pyarrow import pa_version_under12p0 +import pandas.util._test_decorators as td + +import pandas as pd +from pandas import ( + DataFrame, + Series, + Timestamp, + date_range, +) +import pandas._testing as tm +from pandas.tests.copy_view.util import get_array + + +def test_astype_single_dtype(using_copy_on_write): + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": 1.5}) + df_orig = df.copy() + df2 = df.astype("float64") + + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "c"), get_array(df, "c")) + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "c"), get_array(df, "c")) + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + # mutating df2 triggers a copy-on-write for that column/block + df2.iloc[0, 2] = 5.5 + if using_copy_on_write: + assert not np.shares_memory(get_array(df2, "c"), get_array(df, "c")) + tm.assert_frame_equal(df, df_orig) + + # mutating parent also doesn't update result + df2 = df.astype("float64") + df.iloc[0, 2] = 5.5 + tm.assert_frame_equal(df2, df_orig.astype("float64")) + + +@pytest.mark.parametrize("dtype", ["int64", "Int64"]) +@pytest.mark.parametrize("new_dtype", ["int64", "Int64", "int64[pyarrow]"]) +def test_astype_avoids_copy(using_copy_on_write, dtype, new_dtype): + if new_dtype == "int64[pyarrow]": + pytest.importorskip("pyarrow") + df = DataFrame({"a": [1, 2, 3]}, dtype=dtype) + df_orig = df.copy() + df2 = df.astype(new_dtype) + + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + # mutating df2 triggers a copy-on-write for that column/block + df2.iloc[0, 0] = 10 + if using_copy_on_write: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + tm.assert_frame_equal(df, df_orig) + + # mutating parent also doesn't update result + df2 = df.astype(new_dtype) + df.iloc[0, 0] = 100 + tm.assert_frame_equal(df2, df_orig.astype(new_dtype)) + + +@pytest.mark.parametrize("dtype", ["float64", "int32", "Int32", "int32[pyarrow]"]) +def test_astype_different_target_dtype(using_copy_on_write, dtype): + if dtype == "int32[pyarrow]": + pytest.importorskip("pyarrow") + df = DataFrame({"a": [1, 2, 3]}) + df_orig = df.copy() + df2 = df.astype(dtype) + + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + if using_copy_on_write: + assert df2._mgr._has_no_reference(0) + + df2.iloc[0, 0] = 5 + tm.assert_frame_equal(df, df_orig) + + # mutating parent also doesn't update result + df2 = df.astype(dtype) + df.iloc[0, 0] = 100 + tm.assert_frame_equal(df2, df_orig.astype(dtype)) + + +@td.skip_array_manager_invalid_test +def test_astype_numpy_to_ea(): + ser = Series([1, 2, 3]) + with pd.option_context("mode.copy_on_write", True): + result = ser.astype("Int64") + assert np.shares_memory(get_array(ser), get_array(result)) + + +@pytest.mark.parametrize( + "dtype, new_dtype", [("object", "string"), ("string", "object")] +) +def test_astype_string_and_object(using_copy_on_write, dtype, new_dtype): + df = DataFrame({"a": ["a", "b", "c"]}, dtype=dtype) + df_orig = df.copy() + df2 = df.astype(new_dtype) + + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + df2.iloc[0, 0] = "x" + tm.assert_frame_equal(df, df_orig) + + +@pytest.mark.parametrize( + "dtype, new_dtype", [("object", "string"), ("string", "object")] +) +def test_astype_string_and_object_update_original( + using_copy_on_write, dtype, new_dtype +): + df = DataFrame({"a": ["a", "b", "c"]}, dtype=dtype) + df2 = df.astype(new_dtype) + df_orig = df2.copy() + + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + df.iloc[0, 0] = "x" + tm.assert_frame_equal(df2, df_orig) + + +def test_astype_str_copy_on_pickle_roundrip(): + # TODO(infer_string) this test can be removed after 3.0 (once str is the default) + # https://github.com/pandas-dev/pandas/issues/54654 + # ensure_string_array may alter array inplace + base = Series(np.array([(1, 2), None, 1], dtype="object")) + base_copy = pickle.loads(pickle.dumps(base)) + base_copy.astype(str) + tm.assert_series_equal(base, base_copy) + + +def test_astype_string_copy_on_pickle_roundrip(any_string_dtype): + # https://github.com/pandas-dev/pandas/issues/54654 + # ensure_string_array may alter array inplace + base = Series(np.array([(1, 2), None, 1], dtype="object")) + base_copy = pickle.loads(pickle.dumps(base)) + base_copy.astype(any_string_dtype) + tm.assert_series_equal(base, base_copy) + + +def test_astype_string_read_only_on_pickle_roundrip(any_string_dtype): + # https://github.com/pandas-dev/pandas/issues/54654 + # ensure_string_array may alter read-only array inplace + base = Series(np.array([(1, 2), None, 1], dtype="object")) + base_copy = pickle.loads(pickle.dumps(base)) + base_copy._values.flags.writeable = False + base_copy.astype(any_string_dtype) + tm.assert_series_equal(base, base_copy) + + +def test_astype_dict_dtypes(using_copy_on_write): + df = DataFrame( + {"a": [1, 2, 3], "b": [4, 5, 6], "c": Series([1.5, 1.5, 1.5], dtype="float64")} + ) + df_orig = df.copy() + df2 = df.astype({"a": "float64", "c": "float64"}) + + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "c"), get_array(df, "c")) + assert np.shares_memory(get_array(df2, "b"), get_array(df, "b")) + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "c"), get_array(df, "c")) + assert not np.shares_memory(get_array(df2, "b"), get_array(df, "b")) + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + # mutating df2 triggers a copy-on-write for that column/block + df2.iloc[0, 2] = 5.5 + if using_copy_on_write: + assert not np.shares_memory(get_array(df2, "c"), get_array(df, "c")) + + df2.iloc[0, 1] = 10 + if using_copy_on_write: + assert not np.shares_memory(get_array(df2, "b"), get_array(df, "b")) + tm.assert_frame_equal(df, df_orig) + + +def test_astype_different_datetime_resos(using_copy_on_write): + df = DataFrame({"a": date_range("2019-12-31", periods=2, freq="D")}) + result = df.astype("datetime64[ms]") + + assert not np.shares_memory(get_array(df, "a"), get_array(result, "a")) + if using_copy_on_write: + assert result._mgr._has_no_reference(0) + + +def test_astype_different_timezones(using_copy_on_write): + df = DataFrame( + {"a": date_range("2019-12-31", periods=5, freq="D", tz="US/Pacific")} + ) + result = df.astype("datetime64[ns, Europe/Berlin]") + if using_copy_on_write: + assert not result._mgr._has_no_reference(0) + assert np.shares_memory(get_array(df, "a"), get_array(result, "a")) + + +def test_astype_different_timezones_different_reso(using_copy_on_write): + df = DataFrame( + {"a": date_range("2019-12-31", periods=5, freq="D", tz="US/Pacific")} + ) + result = df.astype("datetime64[ms, Europe/Berlin]") + if using_copy_on_write: + assert result._mgr._has_no_reference(0) + assert not np.shares_memory(get_array(df, "a"), get_array(result, "a")) + + +def test_astype_arrow_timestamp(using_copy_on_write): + pytest.importorskip("pyarrow") + df = DataFrame( + { + "a": [ + Timestamp("2020-01-01 01:01:01.000001"), + Timestamp("2020-01-01 01:01:01.000001"), + ] + }, + dtype="M8[ns]", + ) + result = df.astype("timestamp[ns][pyarrow]") + if using_copy_on_write: + assert not result._mgr._has_no_reference(0) + if pa_version_under12p0: + assert not np.shares_memory( + get_array(df, "a"), get_array(result, "a")._pa_array + ) + else: + assert np.shares_memory( + get_array(df, "a"), get_array(result, "a")._pa_array + ) + + +def test_convert_dtypes_infer_objects(using_copy_on_write): + ser = Series(["a", "b", "c"]) + ser_orig = ser.copy() + result = ser.convert_dtypes( + convert_integer=False, + convert_boolean=False, + convert_floating=False, + convert_string=False, + ) + + if using_copy_on_write: + assert tm.shares_memory(get_array(ser), get_array(result)) + else: + assert not np.shares_memory(get_array(ser), get_array(result)) + + result.iloc[0] = "x" + tm.assert_series_equal(ser, ser_orig) + + +def test_convert_dtypes(using_copy_on_write, using_infer_string): + df = DataFrame({"a": ["a", "b"], "b": [1, 2], "c": [1.5, 2.5], "d": [True, False]}) + df_orig = df.copy() + df2 = df.convert_dtypes() + + if using_copy_on_write: + if using_infer_string and HAS_PYARROW: + # TODO the default nullable string dtype still uses python storage + # this should be changed to pyarrow if installed + assert not tm.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert tm.shares_memory(get_array(df2, "a"), get_array(df, "a")) + assert tm.shares_memory(get_array(df2, "d"), get_array(df, "d")) + assert tm.shares_memory(get_array(df2, "b"), get_array(df, "b")) + assert tm.shares_memory(get_array(df2, "c"), get_array(df, "c")) + else: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + assert not np.shares_memory(get_array(df2, "b"), get_array(df, "b")) + assert not np.shares_memory(get_array(df2, "c"), get_array(df, "c")) + assert not np.shares_memory(get_array(df2, "d"), get_array(df, "d")) + + df2.iloc[0, 0] = "x" + df2.iloc[0, 1] = 10 + tm.assert_frame_equal(df, df_orig) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_chained_assignment_deprecation.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_chained_assignment_deprecation.py new file mode 100644 index 0000000000000000000000000000000000000000..49f5254f5bab44fa871b80eb898bde689974aff7 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_chained_assignment_deprecation.py @@ -0,0 +1,260 @@ +import numpy as np +import pytest + +from pandas.compat import ( + PY311, + WARNING_CHECK_DISABLED, +) +from pandas.errors import ( + ChainedAssignmentError, + SettingWithCopyWarning, +) + +from pandas import ( + DataFrame, + option_context, +) +import pandas._testing as tm + + +def test_methods_iloc_warn(using_copy_on_write): + if not using_copy_on_write: + df = DataFrame({"a": [1, 2, 3], "b": 1}) + with tm.assert_cow_warning(match="A value"): + df.iloc[:, 0].replace(1, 5, inplace=True) + + with tm.assert_cow_warning(match="A value"): + df.iloc[:, 0].fillna(1, inplace=True) + + with tm.assert_cow_warning(match="A value"): + df.iloc[:, 0].interpolate(inplace=True) + + with tm.assert_cow_warning(match="A value"): + df.iloc[:, 0].ffill(inplace=True) + + with tm.assert_cow_warning(match="A value"): + df.iloc[:, 0].bfill(inplace=True) + + +@pytest.mark.parametrize( + "func, args", + [ + ("replace", (4, 5)), + ("fillna", (1,)), + ("interpolate", ()), + ("bfill", ()), + ("ffill", ()), + ], +) +def test_methods_iloc_getitem_item_cache( + func, args, using_copy_on_write, warn_copy_on_write +): + # ensure we don't incorrectly raise chained assignment warning because + # of the item cache / iloc not setting the item cache + df_orig = DataFrame({"a": [1, 2, 3], "b": 1}) + + df = df_orig.copy() + ser = df.iloc[:, 0] + getattr(ser, func)(*args, inplace=True) + + # parent that holds item_cache is dead, so don't increase ref count + df = df_orig.copy() + ser = df.copy()["a"] + getattr(ser, func)(*args, inplace=True) + + df = df_orig.copy() + df["a"] # populate the item_cache + ser = df.iloc[:, 0] # iloc creates a new object + getattr(ser, func)(*args, inplace=True) + + df = df_orig.copy() + df["a"] # populate the item_cache + ser = df["a"] + getattr(ser, func)(*args, inplace=True) + + df = df_orig.copy() + df["a"] # populate the item_cache + # TODO(CoW-warn) because of the usage of *args, this doesn't warn on Py3.11+ + if using_copy_on_write: + with tm.raises_chained_assignment_error(not PY311): + getattr(df["a"], func)(*args, inplace=True) + else: + with tm.assert_cow_warning(not PY311, match="A value"): + getattr(df["a"], func)(*args, inplace=True) + + df = df_orig.copy() + ser = df["a"] # populate the item_cache and keep ref + if using_copy_on_write: + with tm.raises_chained_assignment_error(not PY311): + getattr(df["a"], func)(*args, inplace=True) + else: + # ideally also warns on the default mode, but the ser' _cacher + # messes up the refcount + even in warning mode this doesn't trigger + # the warning of Py3.1+ (see above) + with tm.assert_cow_warning(warn_copy_on_write and not PY311, match="A value"): + getattr(df["a"], func)(*args, inplace=True) + + +def test_methods_iloc_getitem_item_cache_fillna( + using_copy_on_write, warn_copy_on_write +): + # ensure we don't incorrectly raise chained assignment warning because + # of the item cache / iloc not setting the item cache + df_orig = DataFrame({"a": [1, 2, 3], "b": 1}) + + df = df_orig.copy() + ser = df.iloc[:, 0] + ser.fillna(1, inplace=True) + + # parent that holds item_cache is dead, so don't increase ref count + df = df_orig.copy() + ser = df.copy()["a"] + ser.fillna(1, inplace=True) + + df = df_orig.copy() + df["a"] # populate the item_cache + ser = df.iloc[:, 0] # iloc creates a new object + ser.fillna(1, inplace=True) + + df = df_orig.copy() + df["a"] # populate the item_cache + ser = df["a"] + ser.fillna(1, inplace=True) + + df = df_orig.copy() + df["a"] # populate the item_cache + if using_copy_on_write: + with tm.raises_chained_assignment_error(): + df["a"].fillna(1, inplace=True) + else: + with tm.assert_cow_warning(match="A value"): + df["a"].fillna(1, inplace=True) + + df = df_orig.copy() + ser = df["a"] # populate the item_cache and keep ref + if using_copy_on_write: + with tm.raises_chained_assignment_error(): + df["a"].fillna(1, inplace=True) + else: + # TODO(CoW-warn) ideally also warns on the default mode, but the ser' _cacher + # messes up the refcount + with tm.assert_cow_warning(warn_copy_on_write, match="A value"): + df["a"].fillna(1, inplace=True) + + +# TODO(CoW-warn) expand the cases +@pytest.mark.parametrize( + "indexer", [0, [0, 1], slice(0, 2), np.array([True, False, True])] +) +def test_series_setitem(indexer, using_copy_on_write, warn_copy_on_write): + # ensure we only get a single warning for those typical cases of chained + # assignment + df = DataFrame({"a": [1, 2, 3], "b": 1}) + + # using custom check instead of tm.assert_produces_warning because that doesn't + # fail if multiple warnings are raised + if WARNING_CHECK_DISABLED: + return + + with pytest.warns() as record: + df["a"][indexer] = 0 + assert len(record) == 1 + if using_copy_on_write: + assert record[0].category == ChainedAssignmentError + else: + assert record[0].category == FutureWarning + assert "ChainedAssignmentError" in record[0].message.args[0] + + +@pytest.mark.filterwarnings("ignore::pandas.errors.SettingWithCopyWarning") +@pytest.mark.parametrize( + "indexer", ["a", ["a", "b"], slice(0, 2), np.array([True, False, True])] +) +def test_frame_setitem(indexer, using_copy_on_write): + df = DataFrame({"a": [1, 2, 3, 4, 5], "b": 1}) + + extra_warnings = () if using_copy_on_write else (SettingWithCopyWarning,) + + with option_context("chained_assignment", "warn"): + with tm.raises_chained_assignment_error(extra_warnings=extra_warnings): + df[0:3][indexer] = 10 + + +@pytest.mark.parametrize( + "indexer", [0, [0, 1], slice(0, 2), np.array([True, False, True])] +) +def test_series_iloc_setitem(indexer): + df = DataFrame({"a": [1, 2, 3], "b": 1}) + + with option_context("chained_assignment", "warn"): + with tm.raises_chained_assignment_error(): + df["a"].iloc[indexer] = 0 + + +@pytest.mark.parametrize( + "indexer", [0, [0, 1], slice(0, 2), np.array([True, False, True])] +) +def test_frame_iloc_setitem(indexer, using_copy_on_write): + df = DataFrame({"a": [1, 2, 3, 4, 5], "b": 1}) + + extra_warnings = () if using_copy_on_write else (SettingWithCopyWarning,) + + with option_context("chained_assignment", "warn"): + with tm.raises_chained_assignment_error(extra_warnings=extra_warnings): + df[0:3].iloc[indexer] = 10 + + +@pytest.mark.parametrize( + "indexer", [0, [0, 1], slice(0, 2), np.array([True, False, True])] +) +def test_series_loc_setitem(indexer): + df = DataFrame({"a": [1, 2, 3], "b": 1}) + + with option_context("chained_assignment", "warn"): + with tm.raises_chained_assignment_error(): + df["a"].loc[indexer] = 0 + + +@pytest.mark.parametrize( + "indexer", [0, [0, 1], (0, "a"), slice(0, 2), np.array([True, False, True])] +) +def test_frame_loc_setitem(indexer, using_copy_on_write): + df = DataFrame({"a": [1, 2, 3, 4, 5], "b": 1}) + + extra_warnings = () if using_copy_on_write else (SettingWithCopyWarning,) + + with option_context("chained_assignment", "warn"): + with tm.raises_chained_assignment_error(extra_warnings=extra_warnings): + df[0:3].loc[indexer] = 10 + + +def test_series_at_setitem(): + df = DataFrame({"a": [1, 2, 3], "b": 1}) + + with option_context("chained_assignment", "warn"): + with tm.raises_chained_assignment_error(): + df["a"].at[0] = 0 + + +def test_frame_at_setitem(): + df = DataFrame({"a": [1, 2, 3, 4, 5], "b": 1}) + + with option_context("chained_assignment", "warn"): + with tm.raises_chained_assignment_error(): + df[0:3].at[0, "a"] = 10 + + +def test_series_iat_setitem(): + df = DataFrame({"a": [1, 2, 3], "b": 1}) + + with option_context("chained_assignment", "warn"): + with tm.raises_chained_assignment_error(): + df["a"].iat[0] = 0 + + +def test_frame_iat_setitem(): + df = DataFrame({"a": [1, 2, 3, 4, 5], "b": 1}) + + with option_context("chained_assignment", "warn"): + with tm.raises_chained_assignment_error(): + df[0:3].iat[0, 0] = 10 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_clip.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_clip.py new file mode 100644 index 0000000000000000000000000000000000000000..5c5abdae7a021497d69c61c6b1e75e47a39d00b2 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_clip.py @@ -0,0 +1,106 @@ +import numpy as np + +from pandas.compat import WARNING_CHECK_DISABLED + +from pandas import ( + DataFrame, + option_context, +) +import pandas._testing as tm +from pandas.tests.copy_view.util import get_array + + +def test_clip_inplace_reference(using_copy_on_write, warn_copy_on_write): + df = DataFrame({"a": [1.5, 2, 3]}) + df_copy = df.copy() + arr_a = get_array(df, "a") + view = df[:] + if warn_copy_on_write: + with tm.assert_cow_warning(): + df.clip(lower=2, inplace=True) + else: + df.clip(lower=2, inplace=True) + + if using_copy_on_write: + assert not np.shares_memory(get_array(df, "a"), arr_a) + assert df._mgr._has_no_reference(0) + assert view._mgr._has_no_reference(0) + tm.assert_frame_equal(df_copy, view) + else: + assert np.shares_memory(get_array(df, "a"), arr_a) + + +def test_clip_inplace_reference_no_op(using_copy_on_write): + df = DataFrame({"a": [1.5, 2, 3]}) + df_copy = df.copy() + arr_a = get_array(df, "a") + view = df[:] + df.clip(lower=0, inplace=True) + + assert np.shares_memory(get_array(df, "a"), arr_a) + + if using_copy_on_write: + assert not df._mgr._has_no_reference(0) + assert not view._mgr._has_no_reference(0) + tm.assert_frame_equal(df_copy, view) + + +def test_clip_inplace(using_copy_on_write): + df = DataFrame({"a": [1.5, 2, 3]}) + arr_a = get_array(df, "a") + df.clip(lower=2, inplace=True) + + assert np.shares_memory(get_array(df, "a"), arr_a) + + if using_copy_on_write: + assert df._mgr._has_no_reference(0) + + +def test_clip(using_copy_on_write): + df = DataFrame({"a": [1.5, 2, 3]}) + df_orig = df.copy() + df2 = df.clip(lower=2) + + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + if using_copy_on_write: + assert df._mgr._has_no_reference(0) + tm.assert_frame_equal(df_orig, df) + + +def test_clip_no_op(using_copy_on_write): + df = DataFrame({"a": [1.5, 2, 3]}) + df2 = df.clip(lower=0) + + if using_copy_on_write: + assert not df._mgr._has_no_reference(0) + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + +def test_clip_chained_inplace(using_copy_on_write): + df = DataFrame({"a": [1, 4, 2], "b": 1}) + df_orig = df.copy() + if using_copy_on_write: + with tm.raises_chained_assignment_error(): + df["a"].clip(1, 2, inplace=True) + tm.assert_frame_equal(df, df_orig) + + with tm.raises_chained_assignment_error(): + df[["a"]].clip(1, 2, inplace=True) + tm.assert_frame_equal(df, df_orig) + else: + with tm.assert_produces_warning( + FutureWarning if not WARNING_CHECK_DISABLED else None, + match="inplace method", + ): + df["a"].clip(1, 2, inplace=True) + + with tm.assert_produces_warning(None): + with option_context("mode.chained_assignment", None): + df[["a"]].clip(1, 2, inplace=True) + + with tm.assert_produces_warning(None): + with option_context("mode.chained_assignment", None): + df[df["a"] > 1].clip(1, 2, inplace=True) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_constructors.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_constructors.py new file mode 100644 index 0000000000000000000000000000000000000000..66c9b456f18adc6824333e46f8dbc3e3f806221e --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_constructors.py @@ -0,0 +1,382 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + DataFrame, + DatetimeIndex, + Index, + Period, + PeriodIndex, + Series, + Timedelta, + TimedeltaIndex, + Timestamp, +) +import pandas._testing as tm +from pandas.tests.copy_view.util import get_array + +# ----------------------------------------------------------------------------- +# Copy/view behaviour for Series / DataFrame constructors + + +@pytest.mark.parametrize("dtype", [None, "int64"]) +def test_series_from_series(dtype, using_copy_on_write, warn_copy_on_write): + # Case: constructing a Series from another Series object follows CoW rules: + # a new object is returned and thus mutations are not propagated + ser = Series([1, 2, 3], name="name") + + # default is copy=False -> new Series is a shallow copy / view of original + result = Series(ser, dtype=dtype) + + # the shallow copy still shares memory + assert np.shares_memory(get_array(ser), get_array(result)) + + if using_copy_on_write: + assert result._mgr.blocks[0].refs.has_reference() + + if using_copy_on_write: + # mutating new series copy doesn't mutate original + result.iloc[0] = 0 + assert ser.iloc[0] == 1 + # mutating triggered a copy-on-write -> no longer shares memory + assert not np.shares_memory(get_array(ser), get_array(result)) + else: + # mutating shallow copy does mutate original + with tm.assert_cow_warning(warn_copy_on_write): + result.iloc[0] = 0 + assert ser.iloc[0] == 0 + # and still shares memory + assert np.shares_memory(get_array(ser), get_array(result)) + + # the same when modifying the parent + result = Series(ser, dtype=dtype) + + if using_copy_on_write: + # mutating original doesn't mutate new series + ser.iloc[0] = 0 + assert result.iloc[0] == 1 + else: + # mutating original does mutate shallow copy + with tm.assert_cow_warning(warn_copy_on_write): + ser.iloc[0] = 0 + assert result.iloc[0] == 0 + + +def test_series_from_series_with_reindex(using_copy_on_write, warn_copy_on_write): + # Case: constructing a Series from another Series with specifying an index + # that potentially requires a reindex of the values + ser = Series([1, 2, 3], name="name") + + # passing an index that doesn't actually require a reindex of the values + # -> without CoW we get an actual mutating view + for index in [ + ser.index, + ser.index.copy(), + list(ser.index), + ser.index.rename("idx"), + ]: + result = Series(ser, index=index) + assert np.shares_memory(ser.values, result.values) + with tm.assert_cow_warning(warn_copy_on_write): + result.iloc[0] = 0 + if using_copy_on_write: + assert ser.iloc[0] == 1 + else: + assert ser.iloc[0] == 0 + + # ensure that if an actual reindex is needed, we don't have any refs + # (mutating the result wouldn't trigger CoW) + result = Series(ser, index=[0, 1, 2, 3]) + assert not np.shares_memory(ser.values, result.values) + if using_copy_on_write: + assert not result._mgr.blocks[0].refs.has_reference() + + +@pytest.mark.parametrize("fastpath", [False, True]) +@pytest.mark.parametrize("dtype", [None, "int64"]) +@pytest.mark.parametrize("idx", [None, pd.RangeIndex(start=0, stop=3, step=1)]) +@pytest.mark.parametrize( + "arr", [np.array([1, 2, 3], dtype="int64"), pd.array([1, 2, 3], dtype="Int64")] +) +def test_series_from_array(using_copy_on_write, idx, dtype, fastpath, arr): + if idx is None or dtype is not None: + fastpath = False + msg = "The 'fastpath' keyword in pd.Series is deprecated" + with tm.assert_produces_warning(DeprecationWarning, match=msg): + ser = Series(arr, dtype=dtype, index=idx, fastpath=fastpath) + ser_orig = ser.copy() + data = getattr(arr, "_data", arr) + if using_copy_on_write: + assert not np.shares_memory(get_array(ser), data) + else: + assert np.shares_memory(get_array(ser), data) + + arr[0] = 100 + if using_copy_on_write: + tm.assert_series_equal(ser, ser_orig) + else: + expected = Series([100, 2, 3], dtype=dtype if dtype is not None else arr.dtype) + tm.assert_series_equal(ser, expected) + + +@pytest.mark.parametrize("copy", [True, False, None]) +def test_series_from_array_different_dtype(using_copy_on_write, copy): + arr = np.array([1, 2, 3], dtype="int64") + ser = Series(arr, dtype="int32", copy=copy) + assert not np.shares_memory(get_array(ser), arr) + + +@pytest.mark.parametrize( + "idx", + [ + Index([1, 2]), + DatetimeIndex([Timestamp("2019-12-31"), Timestamp("2020-12-31")]), + PeriodIndex([Period("2019-12-31"), Period("2020-12-31")]), + TimedeltaIndex([Timedelta("1 days"), Timedelta("2 days")]), + ], +) +def test_series_from_index(using_copy_on_write, idx): + ser = Series(idx) + expected = idx.copy(deep=True) + if using_copy_on_write: + assert np.shares_memory(get_array(ser), get_array(idx)) + assert not ser._mgr._has_no_reference(0) + else: + assert not np.shares_memory(get_array(ser), get_array(idx)) + ser.iloc[0] = ser.iloc[1] + tm.assert_index_equal(idx, expected) + + +def test_series_from_index_different_dtypes(using_copy_on_write): + idx = Index([1, 2, 3], dtype="int64") + ser = Series(idx, dtype="int32") + assert not np.shares_memory(get_array(ser), get_array(idx)) + if using_copy_on_write: + assert ser._mgr._has_no_reference(0) + + +@pytest.mark.filterwarnings("ignore:Setting a value on a view:FutureWarning") +@pytest.mark.parametrize("fastpath", [False, True]) +@pytest.mark.parametrize("dtype", [None, "int64"]) +@pytest.mark.parametrize("idx", [None, pd.RangeIndex(start=0, stop=3, step=1)]) +def test_series_from_block_manager(using_copy_on_write, idx, dtype, fastpath): + ser = Series([1, 2, 3], dtype="int64") + ser_orig = ser.copy() + msg = "The 'fastpath' keyword in pd.Series is deprecated" + with tm.assert_produces_warning(DeprecationWarning, match=msg): + ser2 = Series(ser._mgr, dtype=dtype, fastpath=fastpath, index=idx) + assert np.shares_memory(get_array(ser), get_array(ser2)) + if using_copy_on_write: + assert not ser2._mgr._has_no_reference(0) + + ser2.iloc[0] = 100 + if using_copy_on_write: + tm.assert_series_equal(ser, ser_orig) + else: + expected = Series([100, 2, 3]) + tm.assert_series_equal(ser, expected) + + +def test_series_from_block_manager_different_dtype(using_copy_on_write): + ser = Series([1, 2, 3], dtype="int64") + msg = "Passing a SingleBlockManager to Series" + with tm.assert_produces_warning(DeprecationWarning, match=msg): + ser2 = Series(ser._mgr, dtype="int32") + assert not np.shares_memory(get_array(ser), get_array(ser2)) + if using_copy_on_write: + assert ser2._mgr._has_no_reference(0) + + +@pytest.mark.parametrize("use_mgr", [True, False]) +@pytest.mark.parametrize("columns", [None, ["a"]]) +def test_dataframe_constructor_mgr_or_df( + using_copy_on_write, warn_copy_on_write, columns, use_mgr +): + df = DataFrame({"a": [1, 2, 3]}) + df_orig = df.copy() + + if use_mgr: + data = df._mgr + warn = DeprecationWarning + else: + data = df + warn = None + msg = "Passing a BlockManager to DataFrame" + with tm.assert_produces_warning(warn, match=msg, check_stacklevel=False): + new_df = DataFrame(data) + + assert np.shares_memory(get_array(df, "a"), get_array(new_df, "a")) + with tm.assert_cow_warning(warn_copy_on_write and not use_mgr): + new_df.iloc[0] = 100 + + if using_copy_on_write: + assert not np.shares_memory(get_array(df, "a"), get_array(new_df, "a")) + tm.assert_frame_equal(df, df_orig) + else: + assert np.shares_memory(get_array(df, "a"), get_array(new_df, "a")) + tm.assert_frame_equal(df, new_df) + + +@pytest.mark.parametrize("dtype", [None, "int64", "Int64"]) +@pytest.mark.parametrize("index", [None, [0, 1, 2]]) +@pytest.mark.parametrize("columns", [None, ["a", "b"], ["a", "b", "c"]]) +def test_dataframe_from_dict_of_series( + request, using_copy_on_write, warn_copy_on_write, columns, index, dtype +): + # Case: constructing a DataFrame from Series objects with copy=False + # has to do a lazy following CoW rules + # (the default for DataFrame(dict) is still to copy to ensure consolidation) + s1 = Series([1, 2, 3]) + s2 = Series([4, 5, 6]) + s1_orig = s1.copy() + expected = DataFrame( + {"a": [1, 2, 3], "b": [4, 5, 6]}, index=index, columns=columns, dtype=dtype + ) + + result = DataFrame( + {"a": s1, "b": s2}, index=index, columns=columns, dtype=dtype, copy=False + ) + + # the shallow copy still shares memory + assert np.shares_memory(get_array(result, "a"), get_array(s1)) + + # mutating the new dataframe doesn't mutate original + with tm.assert_cow_warning(warn_copy_on_write): + result.iloc[0, 0] = 10 + if using_copy_on_write: + assert not np.shares_memory(get_array(result, "a"), get_array(s1)) + tm.assert_series_equal(s1, s1_orig) + else: + assert s1.iloc[0] == 10 + + # the same when modifying the parent series + s1 = Series([1, 2, 3]) + s2 = Series([4, 5, 6]) + result = DataFrame( + {"a": s1, "b": s2}, index=index, columns=columns, dtype=dtype, copy=False + ) + with tm.assert_cow_warning(warn_copy_on_write): + s1.iloc[0] = 10 + if using_copy_on_write: + assert not np.shares_memory(get_array(result, "a"), get_array(s1)) + tm.assert_frame_equal(result, expected) + else: + assert result.iloc[0, 0] == 10 + + +@pytest.mark.parametrize("dtype", [None, "int64"]) +def test_dataframe_from_dict_of_series_with_reindex(dtype): + # Case: constructing a DataFrame from Series objects with copy=False + # and passing an index that requires an actual (no-view) reindex -> need + # to ensure the result doesn't have refs set up to unnecessarily trigger + # a copy on write + s1 = Series([1, 2, 3]) + s2 = Series([4, 5, 6]) + df = DataFrame({"a": s1, "b": s2}, index=[1, 2, 3], dtype=dtype, copy=False) + + # df should own its memory, so mutating shouldn't trigger a copy + arr_before = get_array(df, "a") + assert not np.shares_memory(arr_before, get_array(s1)) + df.iloc[0, 0] = 100 + arr_after = get_array(df, "a") + assert np.shares_memory(arr_before, arr_after) + + +@pytest.mark.parametrize("cons", [Series, Index]) +@pytest.mark.parametrize( + "data, dtype", [([1, 2], None), ([1, 2], "int64"), (["a", "b"], object)] +) +def test_dataframe_from_series_or_index( + using_copy_on_write, warn_copy_on_write, data, dtype, cons +): + obj = cons(data, dtype=dtype) + obj_orig = obj.copy() + df = DataFrame(obj, dtype=dtype) + assert np.shares_memory(get_array(obj), get_array(df, 0)) + if using_copy_on_write: + assert not df._mgr._has_no_reference(0) + + with tm.assert_cow_warning(warn_copy_on_write): + df.iloc[0, 0] = data[-1] + if using_copy_on_write: + tm.assert_equal(obj, obj_orig) + + +@pytest.mark.parametrize("cons", [Series, Index]) +def test_dataframe_from_series_or_index_different_dtype(using_copy_on_write, cons): + obj = cons([1, 2], dtype="int64") + df = DataFrame(obj, dtype="int32") + assert not np.shares_memory(get_array(obj), get_array(df, 0)) + if using_copy_on_write: + assert df._mgr._has_no_reference(0) + + +def test_dataframe_from_series_infer_datetime(using_copy_on_write): + ser = Series([Timestamp("2019-12-31"), Timestamp("2020-12-31")], dtype=object) + with tm.assert_produces_warning(FutureWarning, match="Dtype inference"): + df = DataFrame(ser) + assert not np.shares_memory(get_array(ser), get_array(df, 0)) + if using_copy_on_write: + assert df._mgr._has_no_reference(0) + + +@pytest.mark.parametrize("index", [None, [0, 1, 2]]) +def test_dataframe_from_dict_of_series_with_dtype(index): + # Variant of above, but now passing a dtype that causes a copy + # -> need to ensure the result doesn't have refs set up to unnecessarily + # trigger a copy on write + s1 = Series([1.0, 2.0, 3.0]) + s2 = Series([4, 5, 6]) + df = DataFrame({"a": s1, "b": s2}, index=index, dtype="int64", copy=False) + + # df should own its memory, so mutating shouldn't trigger a copy + arr_before = get_array(df, "a") + assert not np.shares_memory(arr_before, get_array(s1)) + df.iloc[0, 0] = 100 + arr_after = get_array(df, "a") + assert np.shares_memory(arr_before, arr_after) + + +@pytest.mark.parametrize("copy", [False, None, True]) +def test_frame_from_numpy_array(using_copy_on_write, copy, using_array_manager): + arr = np.array([[1, 2], [3, 4]]) + df = DataFrame(arr, copy=copy) + + if ( + using_copy_on_write + and copy is not False + or copy is True + or (using_array_manager and copy is None) + ): + assert not np.shares_memory(get_array(df, 0), arr) + else: + assert np.shares_memory(get_array(df, 0), arr) + + +def test_dataframe_from_records_with_dataframe(using_copy_on_write, warn_copy_on_write): + df = DataFrame({"a": [1, 2, 3]}) + df_orig = df.copy() + with tm.assert_produces_warning(FutureWarning): + df2 = DataFrame.from_records(df) + if using_copy_on_write: + assert not df._mgr._has_no_reference(0) + assert np.shares_memory(get_array(df, "a"), get_array(df2, "a")) + with tm.assert_cow_warning(warn_copy_on_write): + df2.iloc[0, 0] = 100 + if using_copy_on_write: + tm.assert_frame_equal(df, df_orig) + else: + tm.assert_frame_equal(df, df2) + + +def test_frame_from_dict_of_index(using_copy_on_write): + idx = Index([1, 2, 3]) + expected = idx.copy(deep=True) + df = DataFrame({"a": idx}, copy=False) + assert np.shares_memory(get_array(df, "a"), idx._values) + if using_copy_on_write: + assert not df._mgr._has_no_reference(0) + + df.iloc[0, 0] = 100 + tm.assert_index_equal(idx, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_core_functionalities.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_core_functionalities.py new file mode 100644 index 0000000000000000000000000000000000000000..8dc80c5cc0e0eadbe792e114d48593d95df17907 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_core_functionalities.py @@ -0,0 +1,106 @@ +import numpy as np +import pytest + +from pandas import DataFrame +import pandas._testing as tm +from pandas.tests.copy_view.util import get_array + + +def test_assigning_to_same_variable_removes_references(using_copy_on_write): + df = DataFrame({"a": [1, 2, 3]}) + df = df.reset_index() + if using_copy_on_write: + assert df._mgr._has_no_reference(1) + arr = get_array(df, "a") + df.iloc[0, 1] = 100 # Write into a + + assert np.shares_memory(arr, get_array(df, "a")) + + +def test_setitem_dont_track_unnecessary_references(using_copy_on_write): + df = DataFrame({"a": [1, 2, 3], "b": 1, "c": 1}) + + df["b"] = 100 + arr = get_array(df, "a") + # We split the block in setitem, if we are not careful the new blocks will + # reference each other triggering a copy + df.iloc[0, 0] = 100 + assert np.shares_memory(arr, get_array(df, "a")) + + +def test_setitem_with_view_copies(using_copy_on_write, warn_copy_on_write): + df = DataFrame({"a": [1, 2, 3], "b": 1, "c": 1}) + view = df[:] + expected = df.copy() + + df["b"] = 100 + arr = get_array(df, "a") + with tm.assert_cow_warning(warn_copy_on_write): + df.iloc[0, 0] = 100 # Check that we correctly track reference + if using_copy_on_write: + assert not np.shares_memory(arr, get_array(df, "a")) + tm.assert_frame_equal(view, expected) + + +def test_setitem_with_view_invalidated_does_not_copy( + using_copy_on_write, warn_copy_on_write, request +): + df = DataFrame({"a": [1, 2, 3], "b": 1, "c": 1}) + view = df[:] + + df["b"] = 100 + arr = get_array(df, "a") + view = None # noqa: F841 + # TODO(CoW-warn) false positive? -> block gets split because of `df["b"] = 100` + # which introduces additional refs, even when those of `view` go out of scopes + with tm.assert_cow_warning(warn_copy_on_write): + df.iloc[0, 0] = 100 + if using_copy_on_write: + # Setitem split the block. Since the old block shared data with view + # all the new blocks are referencing view and each other. When view + # goes out of scope, they don't share data with any other block, + # so we should not trigger a copy + mark = pytest.mark.xfail( + reason="blk.delete does not track references correctly" + ) + request.applymarker(mark) + assert np.shares_memory(arr, get_array(df, "a")) + + +def test_out_of_scope(using_copy_on_write): + def func(): + df = DataFrame({"a": [1, 2], "b": 1.5, "c": 1}) + # create some subset + result = df[["a", "b"]] + return result + + result = func() + if using_copy_on_write: + assert not result._mgr.blocks[0].refs.has_reference() + assert not result._mgr.blocks[1].refs.has_reference() + + +def test_delete(using_copy_on_write): + df = DataFrame( + np.random.default_rng(2).standard_normal((4, 3)), columns=["a", "b", "c"] + ) + del df["b"] + if using_copy_on_write: + assert not df._mgr.blocks[0].refs.has_reference() + assert not df._mgr.blocks[1].refs.has_reference() + + df = df[["a"]] + if using_copy_on_write: + assert not df._mgr.blocks[0].refs.has_reference() + + +def test_delete_reference(using_copy_on_write): + df = DataFrame( + np.random.default_rng(2).standard_normal((4, 3)), columns=["a", "b", "c"] + ) + x = df[:] + del df["b"] + if using_copy_on_write: + assert df._mgr.blocks[0].refs.has_reference() + assert df._mgr.blocks[1].refs.has_reference() + assert x._mgr.blocks[0].refs.has_reference() diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_functions.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_functions.py new file mode 100644 index 0000000000000000000000000000000000000000..ce444ac3571fa64866e43fc982577e6f6f28fe5d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_functions.py @@ -0,0 +1,397 @@ +import numpy as np +import pytest + +from pandas import ( + DataFrame, + Index, + Series, + concat, + merge, +) +import pandas._testing as tm +from pandas.tests.copy_view.util import get_array + + +def test_concat_frames(using_copy_on_write): + df = DataFrame({"b": ["a"] * 3}, dtype=object) + df2 = DataFrame({"a": ["a"] * 3}, dtype=object) + df_orig = df.copy() + result = concat([df, df2], axis=1) + + if using_copy_on_write: + assert np.shares_memory(get_array(result, "b"), get_array(df, "b")) + assert np.shares_memory(get_array(result, "a"), get_array(df2, "a")) + else: + assert not np.shares_memory(get_array(result, "b"), get_array(df, "b")) + assert not np.shares_memory(get_array(result, "a"), get_array(df2, "a")) + + result.iloc[0, 0] = "d" + if using_copy_on_write: + assert not np.shares_memory(get_array(result, "b"), get_array(df, "b")) + assert np.shares_memory(get_array(result, "a"), get_array(df2, "a")) + + result.iloc[0, 1] = "d" + if using_copy_on_write: + assert not np.shares_memory(get_array(result, "a"), get_array(df2, "a")) + tm.assert_frame_equal(df, df_orig) + + +def test_concat_frames_updating_input(using_copy_on_write): + df = DataFrame({"b": ["a"] * 3}, dtype=object) + df2 = DataFrame({"a": ["a"] * 3}, dtype=object) + result = concat([df, df2], axis=1) + + if using_copy_on_write: + assert np.shares_memory(get_array(result, "b"), get_array(df, "b")) + assert np.shares_memory(get_array(result, "a"), get_array(df2, "a")) + else: + assert not np.shares_memory(get_array(result, "b"), get_array(df, "b")) + assert not np.shares_memory(get_array(result, "a"), get_array(df2, "a")) + + expected = result.copy() + df.iloc[0, 0] = "d" + if using_copy_on_write: + assert not np.shares_memory(get_array(result, "b"), get_array(df, "b")) + assert np.shares_memory(get_array(result, "a"), get_array(df2, "a")) + + df2.iloc[0, 0] = "d" + if using_copy_on_write: + assert not np.shares_memory(get_array(result, "a"), get_array(df2, "a")) + tm.assert_frame_equal(result, expected) + + +def test_concat_series(using_copy_on_write): + ser = Series([1, 2], name="a") + ser2 = Series([3, 4], name="b") + ser_orig = ser.copy() + ser2_orig = ser2.copy() + result = concat([ser, ser2], axis=1) + + if using_copy_on_write: + assert np.shares_memory(get_array(result, "a"), ser.values) + assert np.shares_memory(get_array(result, "b"), ser2.values) + else: + assert not np.shares_memory(get_array(result, "a"), ser.values) + assert not np.shares_memory(get_array(result, "b"), ser2.values) + + result.iloc[0, 0] = 100 + if using_copy_on_write: + assert not np.shares_memory(get_array(result, "a"), ser.values) + assert np.shares_memory(get_array(result, "b"), ser2.values) + + result.iloc[0, 1] = 1000 + if using_copy_on_write: + assert not np.shares_memory(get_array(result, "b"), ser2.values) + tm.assert_series_equal(ser, ser_orig) + tm.assert_series_equal(ser2, ser2_orig) + + +def test_concat_frames_chained(using_copy_on_write): + df1 = DataFrame({"a": [1, 2, 3], "b": [0.1, 0.2, 0.3]}) + df2 = DataFrame({"c": [4, 5, 6]}) + df3 = DataFrame({"d": [4, 5, 6]}) + result = concat([concat([df1, df2], axis=1), df3], axis=1) + expected = result.copy() + + if using_copy_on_write: + assert np.shares_memory(get_array(result, "a"), get_array(df1, "a")) + assert np.shares_memory(get_array(result, "c"), get_array(df2, "c")) + assert np.shares_memory(get_array(result, "d"), get_array(df3, "d")) + else: + assert not np.shares_memory(get_array(result, "a"), get_array(df1, "a")) + assert not np.shares_memory(get_array(result, "c"), get_array(df2, "c")) + assert not np.shares_memory(get_array(result, "d"), get_array(df3, "d")) + + df1.iloc[0, 0] = 100 + if using_copy_on_write: + assert not np.shares_memory(get_array(result, "a"), get_array(df1, "a")) + + tm.assert_frame_equal(result, expected) + + +def test_concat_series_chained(using_copy_on_write): + ser1 = Series([1, 2, 3], name="a") + ser2 = Series([4, 5, 6], name="c") + ser3 = Series([4, 5, 6], name="d") + result = concat([concat([ser1, ser2], axis=1), ser3], axis=1) + expected = result.copy() + + if using_copy_on_write: + assert np.shares_memory(get_array(result, "a"), get_array(ser1, "a")) + assert np.shares_memory(get_array(result, "c"), get_array(ser2, "c")) + assert np.shares_memory(get_array(result, "d"), get_array(ser3, "d")) + else: + assert not np.shares_memory(get_array(result, "a"), get_array(ser1, "a")) + assert not np.shares_memory(get_array(result, "c"), get_array(ser2, "c")) + assert not np.shares_memory(get_array(result, "d"), get_array(ser3, "d")) + + ser1.iloc[0] = 100 + if using_copy_on_write: + assert not np.shares_memory(get_array(result, "a"), get_array(ser1, "a")) + + tm.assert_frame_equal(result, expected) + + +def test_concat_series_updating_input(using_copy_on_write): + ser = Series([1, 2], name="a") + ser2 = Series([3, 4], name="b") + expected = DataFrame({"a": [1, 2], "b": [3, 4]}) + result = concat([ser, ser2], axis=1) + + if using_copy_on_write: + assert np.shares_memory(get_array(result, "a"), get_array(ser, "a")) + assert np.shares_memory(get_array(result, "b"), get_array(ser2, "b")) + else: + assert not np.shares_memory(get_array(result, "a"), get_array(ser, "a")) + assert not np.shares_memory(get_array(result, "b"), get_array(ser2, "b")) + + ser.iloc[0] = 100 + if using_copy_on_write: + assert not np.shares_memory(get_array(result, "a"), get_array(ser, "a")) + assert np.shares_memory(get_array(result, "b"), get_array(ser2, "b")) + tm.assert_frame_equal(result, expected) + + ser2.iloc[0] = 1000 + if using_copy_on_write: + assert not np.shares_memory(get_array(result, "b"), get_array(ser2, "b")) + tm.assert_frame_equal(result, expected) + + +def test_concat_mixed_series_frame(using_copy_on_write): + df = DataFrame({"a": [1, 2, 3], "c": 1}) + ser = Series([4, 5, 6], name="d") + result = concat([df, ser], axis=1) + expected = result.copy() + + if using_copy_on_write: + assert np.shares_memory(get_array(result, "a"), get_array(df, "a")) + assert np.shares_memory(get_array(result, "c"), get_array(df, "c")) + assert np.shares_memory(get_array(result, "d"), get_array(ser, "d")) + else: + assert not np.shares_memory(get_array(result, "a"), get_array(df, "a")) + assert not np.shares_memory(get_array(result, "c"), get_array(df, "c")) + assert not np.shares_memory(get_array(result, "d"), get_array(ser, "d")) + + ser.iloc[0] = 100 + if using_copy_on_write: + assert not np.shares_memory(get_array(result, "d"), get_array(ser, "d")) + + df.iloc[0, 0] = 100 + if using_copy_on_write: + assert not np.shares_memory(get_array(result, "a"), get_array(df, "a")) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("copy", [True, None, False]) +def test_concat_copy_keyword(using_copy_on_write, copy): + df = DataFrame({"a": [1, 2]}) + df2 = DataFrame({"b": [1.5, 2.5]}) + + result = concat([df, df2], axis=1, copy=copy) + + if using_copy_on_write or copy is False: + assert np.shares_memory(get_array(df, "a"), get_array(result, "a")) + assert np.shares_memory(get_array(df2, "b"), get_array(result, "b")) + else: + assert not np.shares_memory(get_array(df, "a"), get_array(result, "a")) + assert not np.shares_memory(get_array(df2, "b"), get_array(result, "b")) + + +@pytest.mark.parametrize( + "func", + [ + lambda df1, df2, **kwargs: df1.merge(df2, **kwargs), + lambda df1, df2, **kwargs: merge(df1, df2, **kwargs), + ], +) +def test_merge_on_key(using_copy_on_write, func): + df1 = DataFrame({"key": Series(["a", "b", "c"], dtype=object), "a": [1, 2, 3]}) + df2 = DataFrame({"key": Series(["a", "b", "c"], dtype=object), "b": [4, 5, 6]}) + df1_orig = df1.copy() + df2_orig = df2.copy() + + result = func(df1, df2, on="key") + + if using_copy_on_write: + assert np.shares_memory(get_array(result, "a"), get_array(df1, "a")) + assert np.shares_memory(get_array(result, "b"), get_array(df2, "b")) + assert np.shares_memory(get_array(result, "key"), get_array(df1, "key")) + assert not np.shares_memory(get_array(result, "key"), get_array(df2, "key")) + else: + assert not np.shares_memory(get_array(result, "a"), get_array(df1, "a")) + assert not np.shares_memory(get_array(result, "b"), get_array(df2, "b")) + + result.iloc[0, 1] = 0 + if using_copy_on_write: + assert not np.shares_memory(get_array(result, "a"), get_array(df1, "a")) + assert np.shares_memory(get_array(result, "b"), get_array(df2, "b")) + + result.iloc[0, 2] = 0 + if using_copy_on_write: + assert not np.shares_memory(get_array(result, "b"), get_array(df2, "b")) + tm.assert_frame_equal(df1, df1_orig) + tm.assert_frame_equal(df2, df2_orig) + + +def test_merge_on_index(using_copy_on_write): + df1 = DataFrame({"a": [1, 2, 3]}) + df2 = DataFrame({"b": [4, 5, 6]}) + df1_orig = df1.copy() + df2_orig = df2.copy() + + result = merge(df1, df2, left_index=True, right_index=True) + + if using_copy_on_write: + assert np.shares_memory(get_array(result, "a"), get_array(df1, "a")) + assert np.shares_memory(get_array(result, "b"), get_array(df2, "b")) + else: + assert not np.shares_memory(get_array(result, "a"), get_array(df1, "a")) + assert not np.shares_memory(get_array(result, "b"), get_array(df2, "b")) + + result.iloc[0, 0] = 0 + if using_copy_on_write: + assert not np.shares_memory(get_array(result, "a"), get_array(df1, "a")) + assert np.shares_memory(get_array(result, "b"), get_array(df2, "b")) + + result.iloc[0, 1] = 0 + if using_copy_on_write: + assert not np.shares_memory(get_array(result, "b"), get_array(df2, "b")) + tm.assert_frame_equal(df1, df1_orig) + tm.assert_frame_equal(df2, df2_orig) + + +@pytest.mark.parametrize( + "func, how", + [ + (lambda df1, df2, **kwargs: merge(df2, df1, on="key", **kwargs), "right"), + (lambda df1, df2, **kwargs: merge(df1, df2, on="key", **kwargs), "left"), + ], +) +def test_merge_on_key_enlarging_one(using_copy_on_write, func, how): + df1 = DataFrame({"key": Series(["a", "b", "c"], dtype=object), "a": [1, 2, 3]}) + df2 = DataFrame({"key": Series(["a", "b"], dtype=object), "b": [4, 5]}) + df1_orig = df1.copy() + df2_orig = df2.copy() + + result = func(df1, df2, how=how) + + if using_copy_on_write: + assert np.shares_memory(get_array(result, "a"), get_array(df1, "a")) + assert not np.shares_memory(get_array(result, "b"), get_array(df2, "b")) + assert df2._mgr._has_no_reference(1) + assert df2._mgr._has_no_reference(0) + assert np.shares_memory(get_array(result, "key"), get_array(df1, "key")) is ( + how == "left" + ) + assert not np.shares_memory(get_array(result, "key"), get_array(df2, "key")) + else: + assert not np.shares_memory(get_array(result, "a"), get_array(df1, "a")) + assert not np.shares_memory(get_array(result, "b"), get_array(df2, "b")) + + if how == "left": + result.iloc[0, 1] = 0 + else: + result.iloc[0, 2] = 0 + if using_copy_on_write: + assert not np.shares_memory(get_array(result, "a"), get_array(df1, "a")) + tm.assert_frame_equal(df1, df1_orig) + tm.assert_frame_equal(df2, df2_orig) + + +@pytest.mark.parametrize("copy", [True, None, False]) +def test_merge_copy_keyword(using_copy_on_write, copy): + df = DataFrame({"a": [1, 2]}) + df2 = DataFrame({"b": [3, 4.5]}) + + result = df.merge(df2, copy=copy, left_index=True, right_index=True) + + if using_copy_on_write or copy is False: + assert np.shares_memory(get_array(df, "a"), get_array(result, "a")) + assert np.shares_memory(get_array(df2, "b"), get_array(result, "b")) + else: + assert not np.shares_memory(get_array(df, "a"), get_array(result, "a")) + assert not np.shares_memory(get_array(df2, "b"), get_array(result, "b")) + + +@pytest.mark.parametrize("dtype", [object, "str"]) +def test_join_on_key(dtype, using_copy_on_write): + df_index = Index(["a", "b", "c"], name="key", dtype=dtype) + + df1 = DataFrame({"a": [1, 2, 3]}, index=df_index.copy(deep=True)) + df2 = DataFrame({"b": [4, 5, 6]}, index=df_index.copy(deep=True)) + + df1_orig = df1.copy() + df2_orig = df2.copy() + + result = df1.join(df2, on="key") + + if using_copy_on_write: + assert np.shares_memory(get_array(result, "a"), get_array(df1, "a")) + assert np.shares_memory(get_array(result, "b"), get_array(df2, "b")) + assert tm.shares_memory(get_array(result.index), get_array(df1.index)) + assert not np.shares_memory(get_array(result.index), get_array(df2.index)) + else: + assert not np.shares_memory(get_array(result, "a"), get_array(df1, "a")) + assert not np.shares_memory(get_array(result, "b"), get_array(df2, "b")) + + result.iloc[0, 0] = 0 + if using_copy_on_write: + assert not np.shares_memory(get_array(result, "a"), get_array(df1, "a")) + assert np.shares_memory(get_array(result, "b"), get_array(df2, "b")) + + result.iloc[0, 1] = 0 + if using_copy_on_write: + assert not np.shares_memory(get_array(result, "b"), get_array(df2, "b")) + + tm.assert_frame_equal(df1, df1_orig) + tm.assert_frame_equal(df2, df2_orig) + + +def test_join_multiple_dataframes_on_key(using_copy_on_write): + df_index = Index(["a", "b", "c"], name="key", dtype=object) + + df1 = DataFrame({"a": [1, 2, 3]}, index=df_index.copy(deep=True)) + dfs_list = [ + DataFrame({"b": [4, 5, 6]}, index=df_index.copy(deep=True)), + DataFrame({"c": [7, 8, 9]}, index=df_index.copy(deep=True)), + ] + + df1_orig = df1.copy() + dfs_list_orig = [df.copy() for df in dfs_list] + + result = df1.join(dfs_list) + + if using_copy_on_write: + assert np.shares_memory(get_array(result, "a"), get_array(df1, "a")) + assert np.shares_memory(get_array(result, "b"), get_array(dfs_list[0], "b")) + assert np.shares_memory(get_array(result, "c"), get_array(dfs_list[1], "c")) + assert np.shares_memory(get_array(result.index), get_array(df1.index)) + assert not np.shares_memory( + get_array(result.index), get_array(dfs_list[0].index) + ) + assert not np.shares_memory( + get_array(result.index), get_array(dfs_list[1].index) + ) + else: + assert not np.shares_memory(get_array(result, "a"), get_array(df1, "a")) + assert not np.shares_memory(get_array(result, "b"), get_array(dfs_list[0], "b")) + assert not np.shares_memory(get_array(result, "c"), get_array(dfs_list[1], "c")) + + result.iloc[0, 0] = 0 + if using_copy_on_write: + assert not np.shares_memory(get_array(result, "a"), get_array(df1, "a")) + assert np.shares_memory(get_array(result, "b"), get_array(dfs_list[0], "b")) + assert np.shares_memory(get_array(result, "c"), get_array(dfs_list[1], "c")) + + result.iloc[0, 1] = 0 + if using_copy_on_write: + assert not np.shares_memory(get_array(result, "b"), get_array(dfs_list[0], "b")) + assert np.shares_memory(get_array(result, "c"), get_array(dfs_list[1], "c")) + + result.iloc[0, 2] = 0 + if using_copy_on_write: + assert not np.shares_memory(get_array(result, "c"), get_array(dfs_list[1], "c")) + + tm.assert_frame_equal(df1, df1_orig) + for df, df_orig in zip(dfs_list, dfs_list_orig): + tm.assert_frame_equal(df, df_orig) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_indexing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_indexing.py new file mode 100644 index 0000000000000000000000000000000000000000..479fa148f994a74eb205e3fa19ba957504744a54 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_indexing.py @@ -0,0 +1,1266 @@ +import numpy as np +import pytest + +from pandas.errors import SettingWithCopyWarning + +from pandas.core.dtypes.common import is_float_dtype + +import pandas as pd +from pandas import ( + DataFrame, + Series, +) +import pandas._testing as tm +from pandas.tests.copy_view.util import get_array + + +@pytest.fixture(params=["numpy", "nullable"]) +def backend(request): + if request.param == "numpy": + + def make_dataframe(*args, **kwargs): + return DataFrame(*args, **kwargs) + + def make_series(*args, **kwargs): + return Series(*args, **kwargs) + + elif request.param == "nullable": + + def make_dataframe(*args, **kwargs): + df = DataFrame(*args, **kwargs) + df_nullable = df.convert_dtypes() + # convert_dtypes will try to cast float to int if there is no loss in + # precision -> undo that change + for col in df.columns: + if is_float_dtype(df[col].dtype) and not is_float_dtype( + df_nullable[col].dtype + ): + df_nullable[col] = df_nullable[col].astype("Float64") + # copy final result to ensure we start with a fully self-owning DataFrame + return df_nullable.copy() + + def make_series(*args, **kwargs): + ser = Series(*args, **kwargs) + return ser.convert_dtypes().copy() + + return request.param, make_dataframe, make_series + + +# ----------------------------------------------------------------------------- +# Indexing operations taking subset + modifying the subset/parent + + +def test_subset_column_selection(backend, using_copy_on_write): + # Case: taking a subset of the columns of a DataFrame + # + afterwards modifying the subset + _, DataFrame, _ = backend + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [0.1, 0.2, 0.3]}) + df_orig = df.copy() + + subset = df[["a", "c"]] + + if using_copy_on_write: + # the subset shares memory ... + assert np.shares_memory(get_array(subset, "a"), get_array(df, "a")) + # ... but uses CoW when being modified + subset.iloc[0, 0] = 0 + else: + assert not np.shares_memory(get_array(subset, "a"), get_array(df, "a")) + # INFO this no longer raise warning since pandas 1.4 + # with pd.option_context("chained_assignment", "warn"): + # with tm.assert_produces_warning(SettingWithCopyWarning): + subset.iloc[0, 0] = 0 + + assert not np.shares_memory(get_array(subset, "a"), get_array(df, "a")) + + expected = DataFrame({"a": [0, 2, 3], "c": [0.1, 0.2, 0.3]}) + tm.assert_frame_equal(subset, expected) + tm.assert_frame_equal(df, df_orig) + + +def test_subset_column_selection_modify_parent(backend, using_copy_on_write): + # Case: taking a subset of the columns of a DataFrame + # + afterwards modifying the parent + _, DataFrame, _ = backend + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [0.1, 0.2, 0.3]}) + + subset = df[["a", "c"]] + + if using_copy_on_write: + # the subset shares memory ... + assert np.shares_memory(get_array(subset, "a"), get_array(df, "a")) + # ... but parent uses CoW parent when it is modified + df.iloc[0, 0] = 0 + + assert not np.shares_memory(get_array(subset, "a"), get_array(df, "a")) + if using_copy_on_write: + # different column/block still shares memory + assert np.shares_memory(get_array(subset, "c"), get_array(df, "c")) + + expected = DataFrame({"a": [1, 2, 3], "c": [0.1, 0.2, 0.3]}) + tm.assert_frame_equal(subset, expected) + + +def test_subset_row_slice(backend, using_copy_on_write, warn_copy_on_write): + # Case: taking a subset of the rows of a DataFrame using a slice + # + afterwards modifying the subset + _, DataFrame, _ = backend + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [0.1, 0.2, 0.3]}) + df_orig = df.copy() + + subset = df[1:3] + subset._mgr._verify_integrity() + + assert np.shares_memory(get_array(subset, "a"), get_array(df, "a")) + + if using_copy_on_write: + subset.iloc[0, 0] = 0 + assert not np.shares_memory(get_array(subset, "a"), get_array(df, "a")) + + else: + # INFO this no longer raise warning since pandas 1.4 + # with pd.option_context("chained_assignment", "warn"): + # with tm.assert_produces_warning(SettingWithCopyWarning): + with tm.assert_cow_warning(warn_copy_on_write): + subset.iloc[0, 0] = 0 + + subset._mgr._verify_integrity() + + expected = DataFrame({"a": [0, 3], "b": [5, 6], "c": [0.2, 0.3]}, index=range(1, 3)) + tm.assert_frame_equal(subset, expected) + if using_copy_on_write: + # original parent dataframe is not modified (CoW) + tm.assert_frame_equal(df, df_orig) + else: + # original parent dataframe is actually updated + df_orig.iloc[1, 0] = 0 + tm.assert_frame_equal(df, df_orig) + + +@pytest.mark.parametrize( + "dtype", ["int64", "float64"], ids=["single-block", "mixed-block"] +) +def test_subset_column_slice( + backend, using_copy_on_write, warn_copy_on_write, using_array_manager, dtype +): + # Case: taking a subset of the columns of a DataFrame using a slice + # + afterwards modifying the subset + dtype_backend, DataFrame, _ = backend + single_block = ( + dtype == "int64" and dtype_backend == "numpy" + ) and not using_array_manager + df = DataFrame( + {"a": [1, 2, 3], "b": [4, 5, 6], "c": np.array([7, 8, 9], dtype=dtype)} + ) + df_orig = df.copy() + + subset = df.iloc[:, 1:] + subset._mgr._verify_integrity() + + if using_copy_on_write: + assert np.shares_memory(get_array(subset, "b"), get_array(df, "b")) + + subset.iloc[0, 0] = 0 + assert not np.shares_memory(get_array(subset, "b"), get_array(df, "b")) + elif warn_copy_on_write: + with tm.assert_cow_warning(single_block): + subset.iloc[0, 0] = 0 + else: + # we only get a warning in case of a single block + warn = SettingWithCopyWarning if single_block else None + with pd.option_context("chained_assignment", "warn"): + with tm.assert_produces_warning(warn): + subset.iloc[0, 0] = 0 + + expected = DataFrame({"b": [0, 5, 6], "c": np.array([7, 8, 9], dtype=dtype)}) + tm.assert_frame_equal(subset, expected) + # original parent dataframe is not modified (also not for BlockManager case, + # except for single block) + if not using_copy_on_write and (using_array_manager or single_block): + df_orig.iloc[0, 1] = 0 + tm.assert_frame_equal(df, df_orig) + else: + tm.assert_frame_equal(df, df_orig) + + +@pytest.mark.parametrize( + "dtype", ["int64", "float64"], ids=["single-block", "mixed-block"] +) +@pytest.mark.parametrize( + "row_indexer", + [slice(1, 2), np.array([False, True, True]), np.array([1, 2])], + ids=["slice", "mask", "array"], +) +@pytest.mark.parametrize( + "column_indexer", + [slice("b", "c"), np.array([False, True, True]), ["b", "c"]], + ids=["slice", "mask", "array"], +) +def test_subset_loc_rows_columns( + backend, + dtype, + row_indexer, + column_indexer, + using_array_manager, + using_copy_on_write, + warn_copy_on_write, +): + # Case: taking a subset of the rows+columns of a DataFrame using .loc + # + afterwards modifying the subset + # Generic test for several combinations of row/column indexers, not all + # of those could actually return a view / need CoW (so this test is not + # checking memory sharing, only ensuring subsequent mutation doesn't + # affect the parent dataframe) + dtype_backend, DataFrame, _ = backend + df = DataFrame( + {"a": [1, 2, 3], "b": [4, 5, 6], "c": np.array([7, 8, 9], dtype=dtype)} + ) + df_orig = df.copy() + + subset = df.loc[row_indexer, column_indexer] + + # a few corner cases _do_ actually modify the parent (with both row and column + # slice, and in case of ArrayManager or BlockManager with single block) + mutate_parent = ( + isinstance(row_indexer, slice) + and isinstance(column_indexer, slice) + and ( + using_array_manager + or ( + dtype == "int64" + and dtype_backend == "numpy" + and not using_copy_on_write + ) + ) + ) + + # modifying the subset never modifies the parent + with tm.assert_cow_warning(warn_copy_on_write and mutate_parent): + subset.iloc[0, 0] = 0 + + expected = DataFrame( + {"b": [0, 6], "c": np.array([8, 9], dtype=dtype)}, index=range(1, 3) + ) + tm.assert_frame_equal(subset, expected) + if mutate_parent: + df_orig.iloc[1, 1] = 0 + tm.assert_frame_equal(df, df_orig) + + +@pytest.mark.parametrize( + "dtype", ["int64", "float64"], ids=["single-block", "mixed-block"] +) +@pytest.mark.parametrize( + "row_indexer", + [slice(1, 3), np.array([False, True, True]), np.array([1, 2])], + ids=["slice", "mask", "array"], +) +@pytest.mark.parametrize( + "column_indexer", + [slice(1, 3), np.array([False, True, True]), [1, 2]], + ids=["slice", "mask", "array"], +) +def test_subset_iloc_rows_columns( + backend, + dtype, + row_indexer, + column_indexer, + using_array_manager, + using_copy_on_write, + warn_copy_on_write, +): + # Case: taking a subset of the rows+columns of a DataFrame using .iloc + # + afterwards modifying the subset + # Generic test for several combinations of row/column indexers, not all + # of those could actually return a view / need CoW (so this test is not + # checking memory sharing, only ensuring subsequent mutation doesn't + # affect the parent dataframe) + dtype_backend, DataFrame, _ = backend + df = DataFrame( + {"a": [1, 2, 3], "b": [4, 5, 6], "c": np.array([7, 8, 9], dtype=dtype)} + ) + df_orig = df.copy() + + subset = df.iloc[row_indexer, column_indexer] + + # a few corner cases _do_ actually modify the parent (with both row and column + # slice, and in case of ArrayManager or BlockManager with single block) + mutate_parent = ( + isinstance(row_indexer, slice) + and isinstance(column_indexer, slice) + and ( + using_array_manager + or ( + dtype == "int64" + and dtype_backend == "numpy" + and not using_copy_on_write + ) + ) + ) + + # modifying the subset never modifies the parent + with tm.assert_cow_warning(warn_copy_on_write and mutate_parent): + subset.iloc[0, 0] = 0 + + expected = DataFrame( + {"b": [0, 6], "c": np.array([8, 9], dtype=dtype)}, index=range(1, 3) + ) + tm.assert_frame_equal(subset, expected) + if mutate_parent: + df_orig.iloc[1, 1] = 0 + tm.assert_frame_equal(df, df_orig) + + +@pytest.mark.parametrize( + "indexer", + [slice(0, 2), np.array([True, True, False]), np.array([0, 1])], + ids=["slice", "mask", "array"], +) +def test_subset_set_with_row_indexer( + backend, indexer_si, indexer, using_copy_on_write, warn_copy_on_write +): + # Case: setting values with a row indexer on a viewing subset + # subset[indexer] = value and subset.iloc[indexer] = value + _, DataFrame, _ = backend + df = DataFrame({"a": [1, 2, 3, 4], "b": [4, 5, 6, 7], "c": [0.1, 0.2, 0.3, 0.4]}) + df_orig = df.copy() + subset = df[1:4] + + if ( + indexer_si is tm.setitem + and isinstance(indexer, np.ndarray) + and indexer.dtype == "int" + ): + pytest.skip("setitem with labels selects on columns") + + if using_copy_on_write: + indexer_si(subset)[indexer] = 0 + elif warn_copy_on_write: + with tm.assert_cow_warning(): + indexer_si(subset)[indexer] = 0 + else: + # INFO iloc no longer raises warning since pandas 1.4 + warn = SettingWithCopyWarning if indexer_si is tm.setitem else None + with pd.option_context("chained_assignment", "warn"): + with tm.assert_produces_warning(warn): + indexer_si(subset)[indexer] = 0 + + expected = DataFrame( + {"a": [0, 0, 4], "b": [0, 0, 7], "c": [0.0, 0.0, 0.4]}, index=range(1, 4) + ) + tm.assert_frame_equal(subset, expected) + if using_copy_on_write: + # original parent dataframe is not modified (CoW) + tm.assert_frame_equal(df, df_orig) + else: + # original parent dataframe is actually updated + df_orig[1:3] = 0 + tm.assert_frame_equal(df, df_orig) + + +def test_subset_set_with_mask(backend, using_copy_on_write, warn_copy_on_write): + # Case: setting values with a mask on a viewing subset: subset[mask] = value + _, DataFrame, _ = backend + df = DataFrame({"a": [1, 2, 3, 4], "b": [4, 5, 6, 7], "c": [0.1, 0.2, 0.3, 0.4]}) + df_orig = df.copy() + subset = df[1:4] + + mask = subset > 3 + + if using_copy_on_write: + subset[mask] = 0 + elif warn_copy_on_write: + with tm.assert_cow_warning(): + subset[mask] = 0 + else: + with pd.option_context("chained_assignment", "warn"): + with tm.assert_produces_warning(SettingWithCopyWarning): + subset[mask] = 0 + + expected = DataFrame( + {"a": [2, 3, 0], "b": [0, 0, 0], "c": [0.20, 0.3, 0.4]}, index=range(1, 4) + ) + tm.assert_frame_equal(subset, expected) + if using_copy_on_write: + # original parent dataframe is not modified (CoW) + tm.assert_frame_equal(df, df_orig) + else: + # original parent dataframe is actually updated + df_orig.loc[3, "a"] = 0 + df_orig.loc[1:3, "b"] = 0 + tm.assert_frame_equal(df, df_orig) + + +def test_subset_set_column(backend, using_copy_on_write, warn_copy_on_write): + # Case: setting a single column on a viewing subset -> subset[col] = value + dtype_backend, DataFrame, _ = backend + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [0.1, 0.2, 0.3]}) + df_orig = df.copy() + subset = df[1:3] + + if dtype_backend == "numpy": + arr = np.array([10, 11], dtype="int64") + else: + arr = pd.array([10, 11], dtype="Int64") + + if using_copy_on_write or warn_copy_on_write: + subset["a"] = arr + else: + with pd.option_context("chained_assignment", "warn"): + with tm.assert_produces_warning(SettingWithCopyWarning): + subset["a"] = arr + + subset._mgr._verify_integrity() + expected = DataFrame( + {"a": [10, 11], "b": [5, 6], "c": [0.2, 0.3]}, index=range(1, 3) + ) + tm.assert_frame_equal(subset, expected) + tm.assert_frame_equal(df, df_orig) + + +@pytest.mark.parametrize( + "dtype", ["int64", "float64"], ids=["single-block", "mixed-block"] +) +def test_subset_set_column_with_loc( + backend, using_copy_on_write, warn_copy_on_write, using_array_manager, dtype +): + # Case: setting a single column with loc on a viewing subset + # -> subset.loc[:, col] = value + _, DataFrame, _ = backend + df = DataFrame( + {"a": [1, 2, 3], "b": [4, 5, 6], "c": np.array([7, 8, 9], dtype=dtype)} + ) + df_orig = df.copy() + subset = df[1:3] + + if using_copy_on_write: + subset.loc[:, "a"] = np.array([10, 11], dtype="int64") + elif warn_copy_on_write: + with tm.assert_cow_warning(): + subset.loc[:, "a"] = np.array([10, 11], dtype="int64") + else: + with pd.option_context("chained_assignment", "warn"): + with tm.assert_produces_warning( + None, + raise_on_extra_warnings=not using_array_manager, + ): + subset.loc[:, "a"] = np.array([10, 11], dtype="int64") + + subset._mgr._verify_integrity() + expected = DataFrame( + {"a": [10, 11], "b": [5, 6], "c": np.array([8, 9], dtype=dtype)}, + index=range(1, 3), + ) + tm.assert_frame_equal(subset, expected) + if using_copy_on_write: + # original parent dataframe is not modified (CoW) + tm.assert_frame_equal(df, df_orig) + else: + # original parent dataframe is actually updated + df_orig.loc[1:3, "a"] = np.array([10, 11], dtype="int64") + tm.assert_frame_equal(df, df_orig) + + +def test_subset_set_column_with_loc2( + backend, using_copy_on_write, warn_copy_on_write, using_array_manager +): + # Case: setting a single column with loc on a viewing subset + # -> subset.loc[:, col] = value + # separate test for case of DataFrame of a single column -> takes a separate + # code path + _, DataFrame, _ = backend + df = DataFrame({"a": [1, 2, 3]}) + df_orig = df.copy() + subset = df[1:3] + + if using_copy_on_write: + subset.loc[:, "a"] = 0 + elif warn_copy_on_write: + with tm.assert_cow_warning(): + subset.loc[:, "a"] = 0 + else: + with pd.option_context("chained_assignment", "warn"): + with tm.assert_produces_warning( + None, + raise_on_extra_warnings=not using_array_manager, + ): + subset.loc[:, "a"] = 0 + + subset._mgr._verify_integrity() + expected = DataFrame({"a": [0, 0]}, index=range(1, 3)) + tm.assert_frame_equal(subset, expected) + if using_copy_on_write: + # original parent dataframe is not modified (CoW) + tm.assert_frame_equal(df, df_orig) + else: + # original parent dataframe is actually updated + df_orig.loc[1:3, "a"] = 0 + tm.assert_frame_equal(df, df_orig) + + +@pytest.mark.parametrize( + "dtype", ["int64", "float64"], ids=["single-block", "mixed-block"] +) +def test_subset_set_columns(backend, using_copy_on_write, warn_copy_on_write, dtype): + # Case: setting multiple columns on a viewing subset + # -> subset[[col1, col2]] = value + dtype_backend, DataFrame, _ = backend + df = DataFrame( + {"a": [1, 2, 3], "b": [4, 5, 6], "c": np.array([7, 8, 9], dtype=dtype)} + ) + df_orig = df.copy() + subset = df[1:3] + + if using_copy_on_write or warn_copy_on_write: + subset[["a", "c"]] = 0 + else: + with pd.option_context("chained_assignment", "warn"): + with tm.assert_produces_warning(SettingWithCopyWarning): + subset[["a", "c"]] = 0 + + subset._mgr._verify_integrity() + if using_copy_on_write: + # first and third column should certainly have no references anymore + assert all(subset._mgr._has_no_reference(i) for i in [0, 2]) + expected = DataFrame({"a": [0, 0], "b": [5, 6], "c": [0, 0]}, index=range(1, 3)) + if dtype_backend == "nullable": + # there is not yet a global option, so overriding a column by setting a scalar + # defaults to numpy dtype even if original column was nullable + expected["a"] = expected["a"].astype("int64") + expected["c"] = expected["c"].astype("int64") + + tm.assert_frame_equal(subset, expected) + tm.assert_frame_equal(df, df_orig) + + +@pytest.mark.parametrize( + "indexer", + [slice("a", "b"), np.array([True, True, False]), ["a", "b"]], + ids=["slice", "mask", "array"], +) +def test_subset_set_with_column_indexer( + backend, indexer, using_copy_on_write, warn_copy_on_write +): + # Case: setting multiple columns with a column indexer on a viewing subset + # -> subset.loc[:, [col1, col2]] = value + _, DataFrame, _ = backend + df = DataFrame({"a": [1, 2, 3], "b": [0.1, 0.2, 0.3], "c": [4, 5, 6]}) + df_orig = df.copy() + subset = df[1:3] + + if using_copy_on_write: + subset.loc[:, indexer] = 0 + elif warn_copy_on_write: + with tm.assert_cow_warning(): + subset.loc[:, indexer] = 0 + else: + with pd.option_context("chained_assignment", "warn"): + # As of 2.0, this setitem attempts (successfully) to set values + # inplace, so the assignment is not chained. + subset.loc[:, indexer] = 0 + + subset._mgr._verify_integrity() + expected = DataFrame({"a": [0, 0], "b": [0.0, 0.0], "c": [5, 6]}, index=range(1, 3)) + tm.assert_frame_equal(subset, expected) + if using_copy_on_write: + tm.assert_frame_equal(df, df_orig) + else: + # pre-2.0, in the mixed case with BlockManager, only column "a" + # would be mutated in the parent frame. this changed with the + # enforcement of GH#45333 + df_orig.loc[1:2, ["a", "b"]] = 0 + tm.assert_frame_equal(df, df_orig) + + +@pytest.mark.parametrize( + "method", + [ + lambda df: df[["a", "b"]][0:2], + lambda df: df[0:2][["a", "b"]], + lambda df: df[["a", "b"]].iloc[0:2], + lambda df: df[["a", "b"]].loc[0:1], + lambda df: df[0:2].iloc[:, 0:2], + lambda df: df[0:2].loc[:, "a":"b"], # type: ignore[misc] + ], + ids=[ + "row-getitem-slice", + "column-getitem", + "row-iloc-slice", + "row-loc-slice", + "column-iloc-slice", + "column-loc-slice", + ], +) +@pytest.mark.parametrize( + "dtype", ["int64", "float64"], ids=["single-block", "mixed-block"] +) +def test_subset_chained_getitem( + request, + backend, + method, + dtype, + using_copy_on_write, + using_array_manager, + warn_copy_on_write, +): + # Case: creating a subset using multiple, chained getitem calls using views + # still needs to guarantee proper CoW behaviour + _, DataFrame, _ = backend + df = DataFrame( + {"a": [1, 2, 3], "b": [4, 5, 6], "c": np.array([7, 8, 9], dtype=dtype)} + ) + df_orig = df.copy() + + # when not using CoW, it depends on whether we have a single block or not + # and whether we are slicing the columns -> in that case we have a view + test_callspec = request.node.callspec.id + if not using_array_manager: + subset_is_view = test_callspec in ( + "numpy-single-block-column-iloc-slice", + "numpy-single-block-column-loc-slice", + ) + else: + # with ArrayManager, it doesn't matter whether we have + # single vs mixed block or numpy vs nullable dtypes + subset_is_view = test_callspec.endswith( + ("column-iloc-slice", "column-loc-slice") + ) + + # modify subset -> don't modify parent + subset = method(df) + + with tm.assert_cow_warning(warn_copy_on_write and subset_is_view): + subset.iloc[0, 0] = 0 + if using_copy_on_write or (not subset_is_view): + tm.assert_frame_equal(df, df_orig) + else: + assert df.iloc[0, 0] == 0 + + # modify parent -> don't modify subset + subset = method(df) + with tm.assert_cow_warning(warn_copy_on_write and subset_is_view): + df.iloc[0, 0] = 0 + expected = DataFrame({"a": [1, 2], "b": [4, 5]}) + if using_copy_on_write or not subset_is_view: + tm.assert_frame_equal(subset, expected) + else: + assert subset.iloc[0, 0] == 0 + + +@pytest.mark.parametrize( + "dtype", ["int64", "float64"], ids=["single-block", "mixed-block"] +) +def test_subset_chained_getitem_column( + backend, dtype, using_copy_on_write, warn_copy_on_write +): + # Case: creating a subset using multiple, chained getitem calls using views + # still needs to guarantee proper CoW behaviour + dtype_backend, DataFrame, Series = backend + df = DataFrame( + {"a": [1, 2, 3], "b": [4, 5, 6], "c": np.array([7, 8, 9], dtype=dtype)} + ) + df_orig = df.copy() + + # modify subset -> don't modify parent + subset = df[:]["a"][0:2] + df._clear_item_cache() + with tm.assert_cow_warning(warn_copy_on_write): + subset.iloc[0] = 0 + if using_copy_on_write: + tm.assert_frame_equal(df, df_orig) + else: + assert df.iloc[0, 0] == 0 + + # modify parent -> don't modify subset + subset = df[:]["a"][0:2] + df._clear_item_cache() + with tm.assert_cow_warning(warn_copy_on_write): + df.iloc[0, 0] = 0 + expected = Series([1, 2], name="a") + if using_copy_on_write: + tm.assert_series_equal(subset, expected) + else: + assert subset.iloc[0] == 0 + + +@pytest.mark.parametrize( + "method", + [ + lambda s: s["a":"c"]["a":"b"], # type: ignore[misc] + lambda s: s.iloc[0:3].iloc[0:2], + lambda s: s.loc["a":"c"].loc["a":"b"], # type: ignore[misc] + lambda s: s.loc["a":"c"] # type: ignore[misc] + .iloc[0:3] + .iloc[0:2] + .loc["a":"b"] # type: ignore[misc] + .iloc[0:1], + ], + ids=["getitem", "iloc", "loc", "long-chain"], +) +def test_subset_chained_getitem_series( + backend, method, using_copy_on_write, warn_copy_on_write +): + # Case: creating a subset using multiple, chained getitem calls using views + # still needs to guarantee proper CoW behaviour + _, _, Series = backend + s = Series([1, 2, 3], index=["a", "b", "c"]) + s_orig = s.copy() + + # modify subset -> don't modify parent + subset = method(s) + with tm.assert_cow_warning(warn_copy_on_write): + subset.iloc[0] = 0 + if using_copy_on_write: + tm.assert_series_equal(s, s_orig) + else: + assert s.iloc[0] == 0 + + # modify parent -> don't modify subset + subset = s.iloc[0:3].iloc[0:2] + with tm.assert_cow_warning(warn_copy_on_write): + s.iloc[0] = 0 + expected = Series([1, 2], index=["a", "b"]) + if using_copy_on_write: + tm.assert_series_equal(subset, expected) + else: + assert subset.iloc[0] == 0 + + +def test_subset_chained_single_block_row( + using_copy_on_write, using_array_manager, warn_copy_on_write +): + # not parametrizing this for dtype backend, since this explicitly tests single block + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [7, 8, 9]}) + df_orig = df.copy() + + # modify subset -> don't modify parent + subset = df[:].iloc[0].iloc[0:2] + with tm.assert_cow_warning(warn_copy_on_write): + subset.iloc[0] = 0 + if using_copy_on_write or using_array_manager: + tm.assert_frame_equal(df, df_orig) + else: + assert df.iloc[0, 0] == 0 + + # modify parent -> don't modify subset + subset = df[:].iloc[0].iloc[0:2] + with tm.assert_cow_warning(warn_copy_on_write): + df.iloc[0, 0] = 0 + expected = Series([1, 4], index=["a", "b"], name=0) + if using_copy_on_write or using_array_manager: + tm.assert_series_equal(subset, expected) + else: + assert subset.iloc[0] == 0 + + +@pytest.mark.parametrize( + "method", + [ + lambda df: df[:], + lambda df: df.loc[:, :], + lambda df: df.loc[:], + lambda df: df.iloc[:, :], + lambda df: df.iloc[:], + ], + ids=["getitem", "loc", "loc-rows", "iloc", "iloc-rows"], +) +def test_null_slice(backend, method, using_copy_on_write, warn_copy_on_write): + # Case: also all variants of indexing with a null slice (:) should return + # new objects to ensure we correctly use CoW for the results + dtype_backend, DataFrame, _ = backend + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [7, 8, 9]}) + df_orig = df.copy() + + df2 = method(df) + + # we always return new objects (shallow copy), regardless of CoW or not + assert df2 is not df + + # and those trigger CoW when mutated + with tm.assert_cow_warning(warn_copy_on_write): + df2.iloc[0, 0] = 0 + if using_copy_on_write: + tm.assert_frame_equal(df, df_orig) + else: + assert df.iloc[0, 0] == 0 + + +@pytest.mark.parametrize( + "method", + [ + lambda s: s[:], + lambda s: s.loc[:], + lambda s: s.iloc[:], + ], + ids=["getitem", "loc", "iloc"], +) +def test_null_slice_series(backend, method, using_copy_on_write, warn_copy_on_write): + _, _, Series = backend + s = Series([1, 2, 3], index=["a", "b", "c"]) + s_orig = s.copy() + + s2 = method(s) + + # we always return new objects, regardless of CoW or not + assert s2 is not s + + # and those trigger CoW when mutated + with tm.assert_cow_warning(warn_copy_on_write): + s2.iloc[0] = 0 + if using_copy_on_write: + tm.assert_series_equal(s, s_orig) + else: + assert s.iloc[0] == 0 + + +# TODO add more tests modifying the parent + + +# ----------------------------------------------------------------------------- +# Series -- Indexing operations taking subset + modifying the subset/parent + + +def test_series_getitem_slice(backend, using_copy_on_write, warn_copy_on_write): + # Case: taking a slice of a Series + afterwards modifying the subset + _, _, Series = backend + s = Series([1, 2, 3], index=["a", "b", "c"]) + s_orig = s.copy() + + subset = s[:] + assert np.shares_memory(get_array(subset), get_array(s)) + + with tm.assert_cow_warning(warn_copy_on_write): + subset.iloc[0] = 0 + + if using_copy_on_write: + assert not np.shares_memory(get_array(subset), get_array(s)) + + expected = Series([0, 2, 3], index=["a", "b", "c"]) + tm.assert_series_equal(subset, expected) + + if using_copy_on_write: + # original parent series is not modified (CoW) + tm.assert_series_equal(s, s_orig) + else: + # original parent series is actually updated + assert s.iloc[0] == 0 + + +def test_series_getitem_ellipsis(using_copy_on_write, warn_copy_on_write): + # Case: taking a view of a Series using Ellipsis + afterwards modifying the subset + s = Series([1, 2, 3]) + s_orig = s.copy() + + subset = s[...] + assert np.shares_memory(get_array(subset), get_array(s)) + + with tm.assert_cow_warning(warn_copy_on_write): + subset.iloc[0] = 0 + + if using_copy_on_write: + assert not np.shares_memory(get_array(subset), get_array(s)) + + expected = Series([0, 2, 3]) + tm.assert_series_equal(subset, expected) + + if using_copy_on_write: + # original parent series is not modified (CoW) + tm.assert_series_equal(s, s_orig) + else: + # original parent series is actually updated + assert s.iloc[0] == 0 + + +@pytest.mark.parametrize( + "indexer", + [slice(0, 2), np.array([True, True, False]), np.array([0, 1])], + ids=["slice", "mask", "array"], +) +def test_series_subset_set_with_indexer( + backend, indexer_si, indexer, using_copy_on_write, warn_copy_on_write +): + # Case: setting values in a viewing Series with an indexer + _, _, Series = backend + s = Series([1, 2, 3], index=["a", "b", "c"]) + s_orig = s.copy() + subset = s[:] + + warn = None + msg = "Series.__setitem__ treating keys as positions is deprecated" + if ( + indexer_si is tm.setitem + and isinstance(indexer, np.ndarray) + and indexer.dtype.kind == "i" + ): + warn = FutureWarning + if warn_copy_on_write: + with tm.assert_cow_warning(raise_on_extra_warnings=warn is not None): + indexer_si(subset)[indexer] = 0 + else: + with tm.assert_produces_warning(warn, match=msg): + indexer_si(subset)[indexer] = 0 + expected = Series([0, 0, 3], index=["a", "b", "c"]) + tm.assert_series_equal(subset, expected) + + if using_copy_on_write: + tm.assert_series_equal(s, s_orig) + else: + tm.assert_series_equal(s, expected) + + +# ----------------------------------------------------------------------------- +# del operator + + +def test_del_frame(backend, using_copy_on_write, warn_copy_on_write): + # Case: deleting a column with `del` on a viewing child dataframe should + # not modify parent + update the references + dtype_backend, DataFrame, _ = backend + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [0.1, 0.2, 0.3]}) + df_orig = df.copy() + df2 = df[:] + + assert np.shares_memory(get_array(df, "a"), get_array(df2, "a")) + + del df2["b"] + + assert np.shares_memory(get_array(df, "a"), get_array(df2, "a")) + tm.assert_frame_equal(df, df_orig) + tm.assert_frame_equal(df2, df_orig[["a", "c"]]) + df2._mgr._verify_integrity() + + with tm.assert_cow_warning(warn_copy_on_write and dtype_backend == "numpy"): + df.loc[0, "b"] = 200 + assert np.shares_memory(get_array(df, "a"), get_array(df2, "a")) + df_orig = df.copy() + + with tm.assert_cow_warning(warn_copy_on_write): + df2.loc[0, "a"] = 100 + if using_copy_on_write: + # modifying child after deleting a column still doesn't update parent + tm.assert_frame_equal(df, df_orig) + else: + assert df.loc[0, "a"] == 100 + + +def test_del_series(backend): + _, _, Series = backend + s = Series([1, 2, 3], index=["a", "b", "c"]) + s_orig = s.copy() + s2 = s[:] + + assert np.shares_memory(get_array(s), get_array(s2)) + + del s2["a"] + + assert not np.shares_memory(get_array(s), get_array(s2)) + tm.assert_series_equal(s, s_orig) + tm.assert_series_equal(s2, s_orig[["b", "c"]]) + + # modifying s2 doesn't need copy on write (due to `del`, s2 is backed by new array) + values = s2.values + s2.loc["b"] = 100 + assert values[0] == 100 + + +# ----------------------------------------------------------------------------- +# Accessing column as Series + + +def test_column_as_series( + backend, using_copy_on_write, warn_copy_on_write, using_array_manager +): + # Case: selecting a single column now also uses Copy-on-Write + dtype_backend, DataFrame, Series = backend + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [0.1, 0.2, 0.3]}) + df_orig = df.copy() + + s = df["a"] + + assert np.shares_memory(get_array(s, "a"), get_array(df, "a")) + + if using_copy_on_write or using_array_manager: + s[0] = 0 + else: + if warn_copy_on_write: + with tm.assert_cow_warning(): + s[0] = 0 + else: + warn = SettingWithCopyWarning if dtype_backend == "numpy" else None + with pd.option_context("chained_assignment", "warn"): + with tm.assert_produces_warning(warn): + s[0] = 0 + + expected = Series([0, 2, 3], name="a") + tm.assert_series_equal(s, expected) + if using_copy_on_write: + # assert not np.shares_memory(s.values, get_array(df, "a")) + tm.assert_frame_equal(df, df_orig) + # ensure cached series on getitem is not the changed series + tm.assert_series_equal(df["a"], df_orig["a"]) + else: + df_orig.iloc[0, 0] = 0 + tm.assert_frame_equal(df, df_orig) + + +def test_column_as_series_set_with_upcast( + backend, using_copy_on_write, using_array_manager, warn_copy_on_write +): + # Case: selecting a single column now also uses Copy-on-Write -> when + # setting a value causes an upcast, we don't need to update the parent + # DataFrame through the cache mechanism + dtype_backend, DataFrame, Series = backend + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [0.1, 0.2, 0.3]}) + df_orig = df.copy() + + s = df["a"] + if dtype_backend == "nullable": + with tm.assert_cow_warning(warn_copy_on_write): + with pytest.raises(TypeError, match="Invalid value"): + s[0] = "foo" + expected = Series([1, 2, 3], name="a") + elif using_copy_on_write or warn_copy_on_write or using_array_manager: + # TODO(CoW-warn) assert the FutureWarning for CoW is also raised + with tm.assert_produces_warning(FutureWarning, match="incompatible dtype"): + s[0] = "foo" + expected = Series(["foo", 2, 3], dtype=object, name="a") + else: + with pd.option_context("chained_assignment", "warn"): + msg = "|".join( + [ + "A value is trying to be set on a copy of a slice from a DataFrame", + "Setting an item of incompatible dtype is deprecated", + ] + ) + with tm.assert_produces_warning( + (SettingWithCopyWarning, FutureWarning), match=msg + ): + s[0] = "foo" + expected = Series(["foo", 2, 3], dtype=object, name="a") + + tm.assert_series_equal(s, expected) + if using_copy_on_write: + tm.assert_frame_equal(df, df_orig) + # ensure cached series on getitem is not the changed series + tm.assert_series_equal(df["a"], df_orig["a"]) + else: + df_orig["a"] = expected + tm.assert_frame_equal(df, df_orig) + + +@pytest.mark.parametrize( + "method", + [ + lambda df: df["a"], + lambda df: df.loc[:, "a"], + lambda df: df.iloc[:, 0], + ], + ids=["getitem", "loc", "iloc"], +) +def test_column_as_series_no_item_cache( + request, + backend, + method, + using_copy_on_write, + warn_copy_on_write, + using_array_manager, +): + # Case: selecting a single column (which now also uses Copy-on-Write to protect + # the view) should always give a new object (i.e. not make use of a cache) + dtype_backend, DataFrame, _ = backend + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [0.1, 0.2, 0.3]}) + df_orig = df.copy() + + s1 = method(df) + s2 = method(df) + + is_iloc = "iloc" in request.node.name + if using_copy_on_write or warn_copy_on_write or is_iloc: + assert s1 is not s2 + else: + assert s1 is s2 + + if using_copy_on_write or using_array_manager: + s1.iloc[0] = 0 + elif warn_copy_on_write: + with tm.assert_cow_warning(): + s1.iloc[0] = 0 + else: + warn = SettingWithCopyWarning if dtype_backend == "numpy" else None + with pd.option_context("chained_assignment", "warn"): + with tm.assert_produces_warning(warn): + s1.iloc[0] = 0 + + if using_copy_on_write: + tm.assert_series_equal(s2, df_orig["a"]) + tm.assert_frame_equal(df, df_orig) + else: + assert s2.iloc[0] == 0 + + +# TODO add tests for other indexing methods on the Series + + +def test_dataframe_add_column_from_series(backend, using_copy_on_write): + # Case: adding a new column to a DataFrame from an existing column/series + # -> delays copy under CoW + _, DataFrame, Series = backend + df = DataFrame({"a": [1, 2, 3], "b": [0.1, 0.2, 0.3]}) + + s = Series([10, 11, 12]) + df["new"] = s + if using_copy_on_write: + assert np.shares_memory(get_array(df, "new"), get_array(s)) + else: + assert not np.shares_memory(get_array(df, "new"), get_array(s)) + + # editing series -> doesn't modify column in frame + s[0] = 0 + expected = DataFrame({"a": [1, 2, 3], "b": [0.1, 0.2, 0.3], "new": [10, 11, 12]}) + tm.assert_frame_equal(df, expected) + + +@pytest.mark.parametrize("val", [100, "a"]) +@pytest.mark.parametrize( + "indexer_func, indexer", + [ + (tm.loc, (0, "a")), + (tm.iloc, (0, 0)), + (tm.loc, ([0], "a")), + (tm.iloc, ([0], 0)), + (tm.loc, (slice(None), "a")), + (tm.iloc, (slice(None), 0)), + ], +) +@pytest.mark.parametrize( + "col", [[0.1, 0.2, 0.3], [7, 8, 9]], ids=["mixed-block", "single-block"] +) +def test_set_value_copy_only_necessary_column( + using_copy_on_write, warn_copy_on_write, indexer_func, indexer, val, col +): + # When setting inplace, only copy column that is modified instead of the whole + # block (by splitting the block) + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": col}) + df_orig = df.copy() + view = df[:] + + if val == "a" and not warn_copy_on_write: + with tm.assert_produces_warning( + FutureWarning, match="Setting an item of incompatible dtype is deprecated" + ): + indexer_func(df)[indexer] = val + if val == "a" and warn_copy_on_write: + with tm.assert_produces_warning( + FutureWarning, match="incompatible dtype|Setting a value on a view" + ): + indexer_func(df)[indexer] = val + else: + with tm.assert_cow_warning(warn_copy_on_write and val == 100): + indexer_func(df)[indexer] = val + + if using_copy_on_write: + assert np.shares_memory(get_array(df, "b"), get_array(view, "b")) + assert not np.shares_memory(get_array(df, "a"), get_array(view, "a")) + tm.assert_frame_equal(view, df_orig) + else: + assert np.shares_memory(get_array(df, "c"), get_array(view, "c")) + if val == "a": + assert not np.shares_memory(get_array(df, "a"), get_array(view, "a")) + else: + assert np.shares_memory(get_array(df, "a"), get_array(view, "a")) + + +def test_series_midx_slice(using_copy_on_write, warn_copy_on_write): + ser = Series([1, 2, 3], index=pd.MultiIndex.from_arrays([[1, 1, 2], [3, 4, 5]])) + ser_orig = ser.copy() + result = ser[1] + assert np.shares_memory(get_array(ser), get_array(result)) + with tm.assert_cow_warning(warn_copy_on_write): + result.iloc[0] = 100 + if using_copy_on_write: + tm.assert_series_equal(ser, ser_orig) + else: + expected = Series( + [100, 2, 3], index=pd.MultiIndex.from_arrays([[1, 1, 2], [3, 4, 5]]) + ) + tm.assert_series_equal(ser, expected) + + +def test_getitem_midx_slice( + using_copy_on_write, warn_copy_on_write, using_array_manager +): + df = DataFrame({("a", "x"): [1, 2], ("a", "y"): 1, ("b", "x"): 2}) + df_orig = df.copy() + new_df = df[("a",)] + + if using_copy_on_write: + assert not new_df._mgr._has_no_reference(0) + + if not using_array_manager: + assert np.shares_memory(get_array(df, ("a", "x")), get_array(new_df, "x")) + if using_copy_on_write: + new_df.iloc[0, 0] = 100 + tm.assert_frame_equal(df_orig, df) + else: + if warn_copy_on_write: + with tm.assert_cow_warning(): + new_df.iloc[0, 0] = 100 + else: + with pd.option_context("chained_assignment", "warn"): + with tm.assert_produces_warning(SettingWithCopyWarning): + new_df.iloc[0, 0] = 100 + assert df.iloc[0, 0] == 100 + + +def test_series_midx_tuples_slice(using_copy_on_write, warn_copy_on_write): + ser = Series( + [1, 2, 3], + index=pd.MultiIndex.from_tuples([((1, 2), 3), ((1, 2), 4), ((2, 3), 4)]), + ) + result = ser[(1, 2)] + assert np.shares_memory(get_array(ser), get_array(result)) + with tm.assert_cow_warning(warn_copy_on_write): + result.iloc[0] = 100 + if using_copy_on_write: + expected = Series( + [1, 2, 3], + index=pd.MultiIndex.from_tuples([((1, 2), 3), ((1, 2), 4), ((2, 3), 4)]), + ) + tm.assert_series_equal(ser, expected) + + +def test_midx_read_only_bool_indexer(): + # GH#56635 + def mklbl(prefix, n): + return [f"{prefix}{i}" for i in range(n)] + + idx = pd.MultiIndex.from_product( + [mklbl("A", 4), mklbl("B", 2), mklbl("C", 4), mklbl("D", 2)] + ) + cols = pd.MultiIndex.from_tuples( + [("a", "foo"), ("a", "bar"), ("b", "foo"), ("b", "bah")], names=["lvl0", "lvl1"] + ) + df = DataFrame(1, index=idx, columns=cols).sort_index().sort_index(axis=1) + + mask = df[("a", "foo")] == 1 + expected_mask = mask.copy() + result = df.loc[pd.IndexSlice[mask, :, ["C1", "C3"]], :] + expected = df.loc[pd.IndexSlice[:, :, ["C1", "C3"]], :] + tm.assert_frame_equal(result, expected) + tm.assert_series_equal(mask, expected_mask) + + +def test_loc_enlarging_with_dataframe(using_copy_on_write): + df = DataFrame({"a": [1, 2, 3]}) + rhs = DataFrame({"b": [1, 2, 3], "c": [4, 5, 6]}) + rhs_orig = rhs.copy() + df.loc[:, ["b", "c"]] = rhs + if using_copy_on_write: + assert np.shares_memory(get_array(df, "b"), get_array(rhs, "b")) + assert np.shares_memory(get_array(df, "c"), get_array(rhs, "c")) + assert not df._mgr._has_no_reference(1) + else: + assert not np.shares_memory(get_array(df, "b"), get_array(rhs, "b")) + + df.iloc[0, 1] = 100 + tm.assert_frame_equal(rhs, rhs_orig) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_internals.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_internals.py new file mode 100644 index 0000000000000000000000000000000000000000..8526d385888974a8c369faec9c3d26d7f35d0d89 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_internals.py @@ -0,0 +1,154 @@ +import numpy as np +import pytest + +import pandas.util._test_decorators as td + +import pandas as pd +from pandas import ( + DataFrame, + Series, +) +import pandas._testing as tm +from pandas.tests.copy_view.util import get_array + + +@td.skip_array_manager_invalid_test +def test_consolidate(using_copy_on_write): + # create unconsolidated DataFrame + df = DataFrame({"a": [1, 2, 3], "b": [0.1, 0.2, 0.3]}) + df["c"] = [4, 5, 6] + + # take a viewing subset + subset = df[:] + + # each block of subset references a block of df + assert all(blk.refs.has_reference() for blk in subset._mgr.blocks) + + # consolidate the two int64 blocks + subset._consolidate_inplace() + + # the float64 block still references the parent one because it still a view + assert subset._mgr.blocks[0].refs.has_reference() + # equivalent of assert np.shares_memory(df["b"].values, subset["b"].values) + # but avoids caching df["b"] + assert np.shares_memory(get_array(df, "b"), get_array(subset, "b")) + + # the new consolidated int64 block does not reference another + assert not subset._mgr.blocks[1].refs.has_reference() + + # the parent dataframe now also only is linked for the float column + assert not df._mgr.blocks[0].refs.has_reference() + assert df._mgr.blocks[1].refs.has_reference() + assert not df._mgr.blocks[2].refs.has_reference() + + # and modifying subset still doesn't modify parent + if using_copy_on_write: + subset.iloc[0, 1] = 0.0 + assert not df._mgr.blocks[1].refs.has_reference() + assert df.loc[0, "b"] == 0.1 + + +@pytest.mark.single_cpu +@td.skip_array_manager_invalid_test +def test_switch_options(): + # ensure we can switch the value of the option within one session + # (assuming data is constructed after switching) + + # using the option_context to ensure we set back to global option value + # after running the test + with pd.option_context("mode.copy_on_write", False): + df = DataFrame({"a": [1, 2, 3], "b": [0.1, 0.2, 0.3]}) + subset = df[:] + subset.iloc[0, 0] = 0 + # df updated with CoW disabled + assert df.iloc[0, 0] == 0 + + pd.options.mode.copy_on_write = True + df = DataFrame({"a": [1, 2, 3], "b": [0.1, 0.2, 0.3]}) + subset = df[:] + subset.iloc[0, 0] = 0 + # df not updated with CoW enabled + assert df.iloc[0, 0] == 1 + + pd.options.mode.copy_on_write = False + df = DataFrame({"a": [1, 2, 3], "b": [0.1, 0.2, 0.3]}) + subset = df[:] + subset.iloc[0, 0] = 0 + # df updated with CoW disabled + assert df.iloc[0, 0] == 0 + + +@td.skip_array_manager_invalid_test +@pytest.mark.parametrize("dtype", [np.intp, np.int8]) +@pytest.mark.parametrize( + "locs, arr", + [ + ([0], np.array([-1, -2, -3])), + ([1], np.array([-1, -2, -3])), + ([5], np.array([-1, -2, -3])), + ([0, 1], np.array([[-1, -2, -3], [-4, -5, -6]]).T), + ([0, 2], np.array([[-1, -2, -3], [-4, -5, -6]]).T), + ([0, 1, 2], np.array([[-1, -2, -3], [-4, -5, -6], [-4, -5, -6]]).T), + ([1, 2], np.array([[-1, -2, -3], [-4, -5, -6]]).T), + ([1, 3], np.array([[-1, -2, -3], [-4, -5, -6]]).T), + ([1, 3], np.array([[-1, -2, -3], [-4, -5, -6]]).T), + ], +) +def test_iset_splits_blocks_inplace(using_copy_on_write, locs, arr, dtype): + # Nothing currently calls iset with + # more than 1 loc with inplace=True (only happens with inplace=False) + # but ensure that it works + df = DataFrame( + { + "a": [1, 2, 3], + "b": [4, 5, 6], + "c": [7, 8, 9], + "d": [10, 11, 12], + "e": [13, 14, 15], + "f": Series(["a", "b", "c"], dtype=object), + }, + ) + arr = arr.astype(dtype) + df_orig = df.copy() + df2 = df.copy(deep=None) # Trigger a CoW (if enabled, otherwise makes copy) + df2._mgr.iset(locs, arr, inplace=True) + + tm.assert_frame_equal(df, df_orig) + + if using_copy_on_write: + for i, col in enumerate(df.columns): + if i not in locs: + assert np.shares_memory(get_array(df, col), get_array(df2, col)) + else: + for col in df.columns: + assert not np.shares_memory(get_array(df, col), get_array(df2, col)) + + +def test_exponential_backoff(): + # GH#55518 + df = DataFrame({"a": [1, 2, 3]}) + for i in range(490): + df.copy(deep=False) + + assert len(df._mgr.blocks[0].refs.referenced_blocks) == 491 + + df = DataFrame({"a": [1, 2, 3]}) + dfs = [df.copy(deep=False) for i in range(510)] + + for i in range(20): + df.copy(deep=False) + assert len(df._mgr.blocks[0].refs.referenced_blocks) == 531 + assert df._mgr.blocks[0].refs.clear_counter == 1000 + + for i in range(500): + df.copy(deep=False) + + # Don't reduce since we still have over 500 objects alive + assert df._mgr.blocks[0].refs.clear_counter == 1000 + + dfs = dfs[:300] + for i in range(500): + df.copy(deep=False) + + # Reduce since there are less than 500 objects alive + assert df._mgr.blocks[0].refs.clear_counter == 500 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_interp_fillna.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_interp_fillna.py new file mode 100644 index 0000000000000000000000000000000000000000..0bcc968014242b0555a5eefb93e04e3dfa773f28 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_interp_fillna.py @@ -0,0 +1,441 @@ +import numpy as np +import pytest + +from pandas.compat import WARNING_CHECK_DISABLED + +from pandas import ( + NA, + ArrowDtype, + DataFrame, + Interval, + NaT, + Series, + Timestamp, + interval_range, + option_context, +) +import pandas._testing as tm +from pandas.tests.copy_view.util import get_array + + +@pytest.mark.parametrize("method", ["pad", "nearest", "linear"]) +def test_interpolate_no_op(using_copy_on_write, method): + df = DataFrame({"a": [1, 2]}) + df_orig = df.copy() + + warn = None + if method == "pad": + warn = FutureWarning + msg = "DataFrame.interpolate with method=pad is deprecated" + with tm.assert_produces_warning(warn, match=msg): + result = df.interpolate(method=method) + + if using_copy_on_write: + assert np.shares_memory(get_array(result, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(result, "a"), get_array(df, "a")) + + result.iloc[0, 0] = 100 + + if using_copy_on_write: + assert not np.shares_memory(get_array(result, "a"), get_array(df, "a")) + tm.assert_frame_equal(df, df_orig) + + +@pytest.mark.parametrize("func", ["ffill", "bfill"]) +def test_interp_fill_functions(using_copy_on_write, func): + # Check that these takes the same code paths as interpolate + df = DataFrame({"a": [1, 2]}) + df_orig = df.copy() + + result = getattr(df, func)() + + if using_copy_on_write: + assert np.shares_memory(get_array(result, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(result, "a"), get_array(df, "a")) + + result.iloc[0, 0] = 100 + + if using_copy_on_write: + assert not np.shares_memory(get_array(result, "a"), get_array(df, "a")) + tm.assert_frame_equal(df, df_orig) + + +@pytest.mark.parametrize("func", ["ffill", "bfill"]) +@pytest.mark.parametrize( + "vals", [[1, np.nan, 2], [Timestamp("2019-12-31"), NaT, Timestamp("2020-12-31")]] +) +def test_interpolate_triggers_copy(using_copy_on_write, vals, func): + df = DataFrame({"a": vals}) + result = getattr(df, func)() + + assert not np.shares_memory(get_array(result, "a"), get_array(df, "a")) + if using_copy_on_write: + # Check that we don't have references when triggering a copy + assert result._mgr._has_no_reference(0) + + +@pytest.mark.parametrize( + "vals", [[1, np.nan, 2], [Timestamp("2019-12-31"), NaT, Timestamp("2020-12-31")]] +) +def test_interpolate_inplace_no_reference_no_copy(using_copy_on_write, vals): + df = DataFrame({"a": vals}) + arr = get_array(df, "a") + df.interpolate(method="linear", inplace=True) + + assert np.shares_memory(arr, get_array(df, "a")) + if using_copy_on_write: + # Check that we don't have references when triggering a copy + assert df._mgr._has_no_reference(0) + + +@pytest.mark.parametrize( + "vals", [[1, np.nan, 2], [Timestamp("2019-12-31"), NaT, Timestamp("2020-12-31")]] +) +def test_interpolate_inplace_with_refs(using_copy_on_write, vals, warn_copy_on_write): + df = DataFrame({"a": [1, np.nan, 2]}) + df_orig = df.copy() + arr = get_array(df, "a") + view = df[:] + with tm.assert_cow_warning(warn_copy_on_write): + df.interpolate(method="linear", inplace=True) + + if using_copy_on_write: + # Check that copy was triggered in interpolate and that we don't + # have any references left + assert not np.shares_memory(arr, get_array(df, "a")) + tm.assert_frame_equal(df_orig, view) + assert df._mgr._has_no_reference(0) + assert view._mgr._has_no_reference(0) + else: + assert np.shares_memory(arr, get_array(df, "a")) + + +@pytest.mark.parametrize("func", ["ffill", "bfill"]) +@pytest.mark.parametrize("dtype", ["float64", "Float64"]) +def test_interp_fill_functions_inplace( + using_copy_on_write, func, warn_copy_on_write, dtype +): + # Check that these takes the same code paths as interpolate + df = DataFrame({"a": [1, np.nan, 2]}, dtype=dtype) + df_orig = df.copy() + arr = get_array(df, "a") + view = df[:] + + with tm.assert_cow_warning(warn_copy_on_write and dtype == "float64"): + getattr(df, func)(inplace=True) + + if using_copy_on_write: + # Check that copy was triggered in interpolate and that we don't + # have any references left + assert not np.shares_memory(arr, get_array(df, "a")) + tm.assert_frame_equal(df_orig, view) + assert df._mgr._has_no_reference(0) + assert view._mgr._has_no_reference(0) + else: + assert np.shares_memory(arr, get_array(df, "a")) is (dtype == "float64") + + +def test_interpolate_cannot_with_object_dtype(using_copy_on_write): + df = DataFrame({"a": ["a", np.nan, "c"], "b": 1}) + df["a"] = df["a"].astype(object) + df_orig = df.copy() + + msg = "DataFrame.interpolate with object dtype" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.interpolate(method="linear") + + if using_copy_on_write: + assert np.shares_memory(get_array(result, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(result, "a"), get_array(df, "a")) + + result.iloc[0, 0] = Timestamp("2021-12-31") + + if using_copy_on_write: + assert not np.shares_memory(get_array(result, "a"), get_array(df, "a")) + tm.assert_frame_equal(df, df_orig) + + +def test_interpolate_object_convert_no_op(using_copy_on_write, using_infer_string): + df = DataFrame({"a": ["a", "b", "c"], "b": 1}) + df["a"] = df["a"].astype(object) + arr_a = get_array(df, "a") + msg = "DataFrame.interpolate with method=pad is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + df.interpolate(method="pad", inplace=True) + + # Now CoW makes a copy, it should not! + if using_copy_on_write and not using_infer_string: + assert df._mgr._has_no_reference(0) + assert np.shares_memory(arr_a, get_array(df, "a")) + + +def test_interpolate_object_convert_copies(using_copy_on_write): + df = DataFrame({"a": Series([1, 2], dtype=object), "b": 1}) + arr_a = get_array(df, "a") + msg = "DataFrame.interpolate with method=pad is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + df.interpolate(method="pad", inplace=True) + + if using_copy_on_write: + assert df._mgr._has_no_reference(0) + assert not np.shares_memory(arr_a, get_array(df, "a")) + + +def test_interpolate_downcast(using_copy_on_write): + df = DataFrame({"a": [1, np.nan, 2.5], "b": 1}) + arr_a = get_array(df, "a") + msg = "DataFrame.interpolate with method=pad is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + df.interpolate(method="pad", inplace=True, downcast="infer") + + if using_copy_on_write: + assert df._mgr._has_no_reference(0) + assert np.shares_memory(arr_a, get_array(df, "a")) + + +def test_interpolate_downcast_reference_triggers_copy(using_copy_on_write): + df = DataFrame({"a": [1, np.nan, 2.5], "b": 1}) + df_orig = df.copy() + arr_a = get_array(df, "a") + view = df[:] + msg = "DataFrame.interpolate with method=pad is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + df.interpolate(method="pad", inplace=True, downcast="infer") + + if using_copy_on_write: + assert df._mgr._has_no_reference(0) + assert not np.shares_memory(arr_a, get_array(df, "a")) + tm.assert_frame_equal(df_orig, view) + else: + tm.assert_frame_equal(df, view) + + +def test_fillna(using_copy_on_write): + df = DataFrame({"a": [1.5, np.nan], "b": 1}) + df_orig = df.copy() + + df2 = df.fillna(5.5) + if using_copy_on_write: + assert np.shares_memory(get_array(df, "b"), get_array(df2, "b")) + else: + assert not np.shares_memory(get_array(df, "b"), get_array(df2, "b")) + + df2.iloc[0, 1] = 100 + tm.assert_frame_equal(df_orig, df) + + +def test_fillna_dict(using_copy_on_write): + df = DataFrame({"a": [1.5, np.nan], "b": 1}) + df_orig = df.copy() + + df2 = df.fillna({"a": 100.5}) + if using_copy_on_write: + assert np.shares_memory(get_array(df, "b"), get_array(df2, "b")) + assert not np.shares_memory(get_array(df, "a"), get_array(df2, "a")) + else: + assert not np.shares_memory(get_array(df, "b"), get_array(df2, "b")) + + df2.iloc[0, 1] = 100 + tm.assert_frame_equal(df_orig, df) + + +@pytest.mark.parametrize("downcast", [None, False]) +def test_fillna_inplace(using_copy_on_write, downcast): + df = DataFrame({"a": [1.5, np.nan], "b": 1}) + arr_a = get_array(df, "a") + arr_b = get_array(df, "b") + + msg = "The 'downcast' keyword in fillna is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + df.fillna(5.5, inplace=True, downcast=downcast) + assert np.shares_memory(get_array(df, "a"), arr_a) + assert np.shares_memory(get_array(df, "b"), arr_b) + if using_copy_on_write: + assert df._mgr._has_no_reference(0) + assert df._mgr._has_no_reference(1) + + +def test_fillna_inplace_reference(using_copy_on_write, warn_copy_on_write): + df = DataFrame({"a": [1.5, np.nan], "b": 1}) + df_orig = df.copy() + arr_a = get_array(df, "a") + arr_b = get_array(df, "b") + view = df[:] + + with tm.assert_cow_warning(warn_copy_on_write): + df.fillna(5.5, inplace=True) + if using_copy_on_write: + assert not np.shares_memory(get_array(df, "a"), arr_a) + assert np.shares_memory(get_array(df, "b"), arr_b) + assert view._mgr._has_no_reference(0) + assert df._mgr._has_no_reference(0) + tm.assert_frame_equal(view, df_orig) + else: + assert np.shares_memory(get_array(df, "a"), arr_a) + assert np.shares_memory(get_array(df, "b"), arr_b) + expected = DataFrame({"a": [1.5, 5.5], "b": 1}) + tm.assert_frame_equal(df, expected) + + +def test_fillna_interval_inplace_reference(using_copy_on_write, warn_copy_on_write): + # Set dtype explicitly to avoid implicit cast when setting nan + ser = Series( + interval_range(start=0, end=5), name="a", dtype="interval[float64, right]" + ) + ser.iloc[1] = np.nan + + ser_orig = ser.copy() + view = ser[:] + with tm.assert_cow_warning(warn_copy_on_write): + ser.fillna(value=Interval(left=0, right=5), inplace=True) + + if using_copy_on_write: + assert not np.shares_memory( + get_array(ser, "a").left.values, get_array(view, "a").left.values + ) + tm.assert_series_equal(view, ser_orig) + else: + assert np.shares_memory( + get_array(ser, "a").left.values, get_array(view, "a").left.values + ) + + +def test_fillna_series_empty_arg(using_copy_on_write): + ser = Series([1, np.nan, 2]) + ser_orig = ser.copy() + result = ser.fillna({}) + + if using_copy_on_write: + assert np.shares_memory(get_array(ser), get_array(result)) + else: + assert not np.shares_memory(get_array(ser), get_array(result)) + + ser.iloc[0] = 100.5 + tm.assert_series_equal(ser_orig, result) + + +def test_fillna_series_empty_arg_inplace(using_copy_on_write): + ser = Series([1, np.nan, 2]) + arr = get_array(ser) + ser.fillna({}, inplace=True) + + assert np.shares_memory(get_array(ser), arr) + if using_copy_on_write: + assert ser._mgr._has_no_reference(0) + + +def test_fillna_ea_noop_shares_memory( + using_copy_on_write, any_numeric_ea_and_arrow_dtype +): + df = DataFrame({"a": [1, NA, 3], "b": 1}, dtype=any_numeric_ea_and_arrow_dtype) + df_orig = df.copy() + df2 = df.fillna(100) + + assert not np.shares_memory(get_array(df, "a"), get_array(df2, "a")) + + if using_copy_on_write: + assert np.shares_memory(get_array(df, "b"), get_array(df2, "b")) + assert not df2._mgr._has_no_reference(1) + elif isinstance(df.dtypes.iloc[0], ArrowDtype): + # arrow is immutable, so no-ops do not need to copy underlying array + assert np.shares_memory(get_array(df, "b"), get_array(df2, "b")) + else: + assert not np.shares_memory(get_array(df, "b"), get_array(df2, "b")) + + tm.assert_frame_equal(df_orig, df) + + df2.iloc[0, 1] = 100 + if using_copy_on_write: + assert not np.shares_memory(get_array(df, "b"), get_array(df2, "b")) + assert df2._mgr._has_no_reference(1) + assert df._mgr._has_no_reference(1) + tm.assert_frame_equal(df_orig, df) + + +def test_fillna_inplace_ea_noop_shares_memory( + using_copy_on_write, warn_copy_on_write, any_numeric_ea_and_arrow_dtype +): + df = DataFrame({"a": [1, NA, 3], "b": 1}, dtype=any_numeric_ea_and_arrow_dtype) + df_orig = df.copy() + view = df[:] + with tm.assert_cow_warning(warn_copy_on_write): + df.fillna(100, inplace=True) + + if isinstance(df["a"].dtype, ArrowDtype) or using_copy_on_write: + assert not np.shares_memory(get_array(df, "a"), get_array(view, "a")) + else: + # MaskedArray can actually respect inplace=True + assert np.shares_memory(get_array(df, "a"), get_array(view, "a")) + + assert np.shares_memory(get_array(df, "b"), get_array(view, "b")) + if using_copy_on_write: + assert not df._mgr._has_no_reference(1) + assert not view._mgr._has_no_reference(1) + + with tm.assert_cow_warning( + warn_copy_on_write and "pyarrow" not in any_numeric_ea_and_arrow_dtype + ): + df.iloc[0, 1] = 100 + if isinstance(df["a"].dtype, ArrowDtype) or using_copy_on_write: + tm.assert_frame_equal(df_orig, view) + else: + # we actually have a view + tm.assert_frame_equal(df, view) + + +def test_fillna_chained_assignment(using_copy_on_write): + df = DataFrame({"a": [1, np.nan, 2], "b": 1}) + df_orig = df.copy() + if using_copy_on_write: + with tm.raises_chained_assignment_error(): + df["a"].fillna(100, inplace=True) + tm.assert_frame_equal(df, df_orig) + + with tm.raises_chained_assignment_error(): + df[["a"]].fillna(100, inplace=True) + tm.assert_frame_equal(df, df_orig) + else: + with tm.assert_produces_warning(None): + with option_context("mode.chained_assignment", None): + df[["a"]].fillna(100, inplace=True) + + with tm.assert_produces_warning(None): + with option_context("mode.chained_assignment", None): + df[df.a > 5].fillna(100, inplace=True) + + with tm.assert_produces_warning( + FutureWarning if not WARNING_CHECK_DISABLED else None, + match="inplace method", + ): + df["a"].fillna(100, inplace=True) + + +@pytest.mark.parametrize("func", ["interpolate", "ffill", "bfill"]) +def test_interpolate_chained_assignment(using_copy_on_write, func): + df = DataFrame({"a": [1, np.nan, 2], "b": 1}) + df_orig = df.copy() + if using_copy_on_write: + with tm.raises_chained_assignment_error(): + getattr(df["a"], func)(inplace=True) + tm.assert_frame_equal(df, df_orig) + + with tm.raises_chained_assignment_error(): + getattr(df[["a"]], func)(inplace=True) + tm.assert_frame_equal(df, df_orig) + else: + with tm.assert_produces_warning( + FutureWarning if not WARNING_CHECK_DISABLED else None, + match="inplace method", + ): + getattr(df["a"], func)(inplace=True) + + with tm.assert_produces_warning(None): + with option_context("mode.chained_assignment", None): + getattr(df[["a"]], func)(inplace=True) + + with tm.assert_produces_warning(None): + with option_context("mode.chained_assignment", None): + getattr(df[df["a"] > 1], func)(inplace=True) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_methods.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_methods.py new file mode 100644 index 0000000000000000000000000000000000000000..2df39a1ec702314c51d81a05cc966140d9e13561 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_methods.py @@ -0,0 +1,2079 @@ +import numpy as np +import pytest + +from pandas.compat import ( + HAS_PYARROW, + WARNING_CHECK_DISABLED, +) +from pandas.errors import SettingWithCopyWarning + +import pandas as pd +from pandas import ( + DataFrame, + Index, + MultiIndex, + Period, + Series, + Timestamp, + date_range, + option_context, + period_range, +) +import pandas._testing as tm +from pandas.tests.copy_view.util import get_array +from pandas.util.version import Version + + +def test_copy(using_copy_on_write): + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [0.1, 0.2, 0.3]}) + df_copy = df.copy() + + # the deep copy by defaults takes a shallow copy of the Index + assert df_copy.index is not df.index + assert df_copy.columns is not df.columns + assert df_copy.index.is_(df.index) + assert df_copy.columns.is_(df.columns) + + # the deep copy doesn't share memory + assert not np.shares_memory(get_array(df_copy, "a"), get_array(df, "a")) + if using_copy_on_write: + assert not df_copy._mgr.blocks[0].refs.has_reference() + assert not df_copy._mgr.blocks[1].refs.has_reference() + + # mutating copy doesn't mutate original + df_copy.iloc[0, 0] = 0 + assert df.iloc[0, 0] == 1 + + +def test_copy_shallow(using_copy_on_write, warn_copy_on_write): + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [0.1, 0.2, 0.3]}) + df_copy = df.copy(deep=False) + + # the shallow copy also makes a shallow copy of the index + if using_copy_on_write: + assert df_copy.index is not df.index + assert df_copy.columns is not df.columns + assert df_copy.index.is_(df.index) + assert df_copy.columns.is_(df.columns) + else: + assert df_copy.index is df.index + assert df_copy.columns is df.columns + + # the shallow copy still shares memory + assert np.shares_memory(get_array(df_copy, "a"), get_array(df, "a")) + if using_copy_on_write: + assert df_copy._mgr.blocks[0].refs.has_reference() + assert df_copy._mgr.blocks[1].refs.has_reference() + + if using_copy_on_write: + # mutating shallow copy doesn't mutate original + df_copy.iloc[0, 0] = 0 + assert df.iloc[0, 0] == 1 + # mutating triggered a copy-on-write -> no longer shares memory + assert not np.shares_memory(get_array(df_copy, "a"), get_array(df, "a")) + # but still shares memory for the other columns/blocks + assert np.shares_memory(get_array(df_copy, "c"), get_array(df, "c")) + else: + # mutating shallow copy does mutate original + with tm.assert_cow_warning(warn_copy_on_write): + df_copy.iloc[0, 0] = 0 + assert df.iloc[0, 0] == 0 + # and still shares memory + assert np.shares_memory(get_array(df_copy, "a"), get_array(df, "a")) + + +@pytest.mark.parametrize("copy", [True, None, False]) +@pytest.mark.parametrize( + "method", + [ + lambda df, copy: df.rename(columns=str.lower, copy=copy), + lambda df, copy: df.reindex(columns=["a", "c"], copy=copy), + lambda df, copy: df.reindex_like(df, copy=copy), + lambda df, copy: df.align(df, copy=copy)[0], + lambda df, copy: df.set_axis(["a", "b", "c"], axis="index", copy=copy), + lambda df, copy: df.rename_axis(index="test", copy=copy), + lambda df, copy: df.rename_axis(columns="test", copy=copy), + lambda df, copy: df.astype({"b": "int64"}, copy=copy), + # lambda df, copy: df.swaplevel(0, 0, copy=copy), + lambda df, copy: df.swapaxes(0, 0, copy=copy), + lambda df, copy: df.truncate(0, 5, copy=copy), + lambda df, copy: df.infer_objects(copy=copy), + lambda df, copy: df.to_timestamp(copy=copy), + lambda df, copy: df.to_period(freq="D", copy=copy), + lambda df, copy: df.tz_localize("US/Central", copy=copy), + lambda df, copy: df.tz_convert("US/Central", copy=copy), + lambda df, copy: df.set_flags(allows_duplicate_labels=False, copy=copy), + ], + ids=[ + "rename", + "reindex", + "reindex_like", + "align", + "set_axis", + "rename_axis0", + "rename_axis1", + "astype", + # "swaplevel", # only series + "swapaxes", + "truncate", + "infer_objects", + "to_timestamp", + "to_period", + "tz_localize", + "tz_convert", + "set_flags", + ], +) +def test_methods_copy_keyword( + request, method, copy, using_copy_on_write, using_array_manager +): + index = None + if "to_timestamp" in request.node.callspec.id: + index = period_range("2012-01-01", freq="D", periods=3) + elif "to_period" in request.node.callspec.id: + index = date_range("2012-01-01", freq="D", periods=3) + elif "tz_localize" in request.node.callspec.id: + index = date_range("2012-01-01", freq="D", periods=3) + elif "tz_convert" in request.node.callspec.id: + index = date_range("2012-01-01", freq="D", periods=3, tz="Europe/Brussels") + + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [0.1, 0.2, 0.3]}, index=index) + + if "swapaxes" in request.node.callspec.id: + msg = "'DataFrame.swapaxes' is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + df2 = method(df, copy=copy) + else: + df2 = method(df, copy=copy) + + share_memory = using_copy_on_write or copy is False + + if request.node.callspec.id.startswith("reindex-"): + # TODO copy=False without CoW still returns a copy in this case + if not using_copy_on_write and not using_array_manager and copy is False: + share_memory = False + + if share_memory: + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + +@pytest.mark.parametrize("copy", [True, None, False]) +@pytest.mark.parametrize( + "method", + [ + lambda ser, copy: ser.rename(index={0: 100}, copy=copy), + lambda ser, copy: ser.rename(None, copy=copy), + lambda ser, copy: ser.reindex(index=ser.index, copy=copy), + lambda ser, copy: ser.reindex_like(ser, copy=copy), + lambda ser, copy: ser.align(ser, copy=copy)[0], + lambda ser, copy: ser.set_axis(["a", "b", "c"], axis="index", copy=copy), + lambda ser, copy: ser.rename_axis(index="test", copy=copy), + lambda ser, copy: ser.astype("int64", copy=copy), + lambda ser, copy: ser.swaplevel(0, 1, copy=copy), + lambda ser, copy: ser.swapaxes(0, 0, copy=copy), + lambda ser, copy: ser.truncate(0, 5, copy=copy), + lambda ser, copy: ser.infer_objects(copy=copy), + lambda ser, copy: ser.to_timestamp(copy=copy), + lambda ser, copy: ser.to_period(freq="D", copy=copy), + lambda ser, copy: ser.tz_localize("US/Central", copy=copy), + lambda ser, copy: ser.tz_convert("US/Central", copy=copy), + lambda ser, copy: ser.set_flags(allows_duplicate_labels=False, copy=copy), + ], + ids=[ + "rename (dict)", + "rename", + "reindex", + "reindex_like", + "align", + "set_axis", + "rename_axis0", + "astype", + "swaplevel", + "swapaxes", + "truncate", + "infer_objects", + "to_timestamp", + "to_period", + "tz_localize", + "tz_convert", + "set_flags", + ], +) +def test_methods_series_copy_keyword(request, method, copy, using_copy_on_write): + index = None + if "to_timestamp" in request.node.callspec.id: + index = period_range("2012-01-01", freq="D", periods=3) + elif "to_period" in request.node.callspec.id: + index = date_range("2012-01-01", freq="D", periods=3) + elif "tz_localize" in request.node.callspec.id: + index = date_range("2012-01-01", freq="D", periods=3) + elif "tz_convert" in request.node.callspec.id: + index = date_range("2012-01-01", freq="D", periods=3, tz="Europe/Brussels") + elif "swaplevel" in request.node.callspec.id: + index = MultiIndex.from_arrays([[1, 2, 3], [4, 5, 6]]) + + ser = Series([1, 2, 3], index=index) + + if "swapaxes" in request.node.callspec.id: + msg = "'Series.swapaxes' is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + ser2 = method(ser, copy=copy) + else: + ser2 = method(ser, copy=copy) + + share_memory = using_copy_on_write or copy is False + + if share_memory: + assert np.shares_memory(get_array(ser2), get_array(ser)) + else: + assert not np.shares_memory(get_array(ser2), get_array(ser)) + + +@pytest.mark.parametrize("copy", [True, None, False]) +def test_transpose_copy_keyword(using_copy_on_write, copy, using_array_manager): + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + result = df.transpose(copy=copy) + share_memory = using_copy_on_write or copy is False or copy is None + share_memory = share_memory and not using_array_manager + + if share_memory: + assert np.shares_memory(get_array(df, "a"), get_array(result, 0)) + else: + assert not np.shares_memory(get_array(df, "a"), get_array(result, 0)) + + +# ----------------------------------------------------------------------------- +# DataFrame methods returning new DataFrame using shallow copy + + +def test_reset_index(using_copy_on_write): + # Case: resetting the index (i.e. adding a new column) + mutating the + # resulting dataframe + df = DataFrame( + {"a": [1, 2, 3], "b": [4, 5, 6], "c": [0.1, 0.2, 0.3]}, index=[10, 11, 12] + ) + df_orig = df.copy() + df2 = df.reset_index() + df2._mgr._verify_integrity() + + if using_copy_on_write: + # still shares memory (df2 is a shallow copy) + assert np.shares_memory(get_array(df2, "b"), get_array(df, "b")) + assert np.shares_memory(get_array(df2, "c"), get_array(df, "c")) + # mutating df2 triggers a copy-on-write for that column / block + df2.iloc[0, 2] = 0 + assert not np.shares_memory(get_array(df2, "b"), get_array(df, "b")) + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "c"), get_array(df, "c")) + tm.assert_frame_equal(df, df_orig) + + +@pytest.mark.parametrize("index", [pd.RangeIndex(0, 2), Index([1, 2])]) +def test_reset_index_series_drop(using_copy_on_write, index): + ser = Series([1, 2], index=index) + ser_orig = ser.copy() + ser2 = ser.reset_index(drop=True) + if using_copy_on_write: + assert np.shares_memory(get_array(ser), get_array(ser2)) + assert not ser._mgr._has_no_reference(0) + else: + assert not np.shares_memory(get_array(ser), get_array(ser2)) + + ser2.iloc[0] = 100 + tm.assert_series_equal(ser, ser_orig) + + +def test_groupby_column_index_in_references(): + df = DataFrame( + {"A": ["a", "b", "c", "d"], "B": [1, 2, 3, 4], "C": ["a", "a", "b", "b"]} + ) + df = df.set_index("A") + key = df["C"] + result = df.groupby(key, observed=True).sum() + expected = df.groupby("C", observed=True).sum() + tm.assert_frame_equal(result, expected) + + +def test_rename_columns(using_copy_on_write): + # Case: renaming columns returns a new dataframe + # + afterwards modifying the result + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [0.1, 0.2, 0.3]}) + df_orig = df.copy() + df2 = df.rename(columns=str.upper) + + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "A"), get_array(df, "a")) + df2.iloc[0, 0] = 0 + assert not np.shares_memory(get_array(df2, "A"), get_array(df, "a")) + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "C"), get_array(df, "c")) + expected = DataFrame({"A": [0, 2, 3], "B": [4, 5, 6], "C": [0.1, 0.2, 0.3]}) + tm.assert_frame_equal(df2, expected) + tm.assert_frame_equal(df, df_orig) + + +def test_rename_columns_modify_parent(using_copy_on_write): + # Case: renaming columns returns a new dataframe + # + afterwards modifying the original (parent) dataframe + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [0.1, 0.2, 0.3]}) + df2 = df.rename(columns=str.upper) + df2_orig = df2.copy() + + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "A"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "A"), get_array(df, "a")) + df.iloc[0, 0] = 0 + assert not np.shares_memory(get_array(df2, "A"), get_array(df, "a")) + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "C"), get_array(df, "c")) + expected = DataFrame({"a": [0, 2, 3], "b": [4, 5, 6], "c": [0.1, 0.2, 0.3]}) + tm.assert_frame_equal(df, expected) + tm.assert_frame_equal(df2, df2_orig) + + +def test_pipe(using_copy_on_write): + df = DataFrame({"a": [1, 2, 3], "b": 1.5}) + df_orig = df.copy() + + def testfunc(df): + return df + + df2 = df.pipe(testfunc) + + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + # mutating df2 triggers a copy-on-write for that column + df2.iloc[0, 0] = 0 + if using_copy_on_write: + tm.assert_frame_equal(df, df_orig) + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + expected = DataFrame({"a": [0, 2, 3], "b": 1.5}) + tm.assert_frame_equal(df, expected) + + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + assert np.shares_memory(get_array(df2, "b"), get_array(df, "b")) + + +def test_pipe_modify_df(using_copy_on_write): + df = DataFrame({"a": [1, 2, 3], "b": 1.5}) + df_orig = df.copy() + + def testfunc(df): + df.iloc[0, 0] = 100 + return df + + df2 = df.pipe(testfunc) + + assert np.shares_memory(get_array(df2, "b"), get_array(df, "b")) + + if using_copy_on_write: + tm.assert_frame_equal(df, df_orig) + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + expected = DataFrame({"a": [100, 2, 3], "b": 1.5}) + tm.assert_frame_equal(df, expected) + + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + assert np.shares_memory(get_array(df2, "b"), get_array(df, "b")) + + +def test_reindex_columns(using_copy_on_write): + # Case: reindexing the column returns a new dataframe + # + afterwards modifying the result + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [0.1, 0.2, 0.3]}) + df_orig = df.copy() + df2 = df.reindex(columns=["a", "c"]) + + if using_copy_on_write: + # still shares memory (df2 is a shallow copy) + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + # mutating df2 triggers a copy-on-write for that column + df2.iloc[0, 0] = 0 + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "c"), get_array(df, "c")) + tm.assert_frame_equal(df, df_orig) + + +@pytest.mark.parametrize( + "index", + [ + lambda idx: idx, + lambda idx: idx.view(), + lambda idx: idx.copy(), + lambda idx: list(idx), + ], + ids=["identical", "view", "copy", "values"], +) +def test_reindex_rows(index, using_copy_on_write): + # Case: reindexing the rows with an index that matches the current index + # can use a shallow copy + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [0.1, 0.2, 0.3]}) + df_orig = df.copy() + df2 = df.reindex(index=index(df.index)) + + if using_copy_on_write: + # still shares memory (df2 is a shallow copy) + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + # mutating df2 triggers a copy-on-write for that column + df2.iloc[0, 0] = 0 + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "c"), get_array(df, "c")) + tm.assert_frame_equal(df, df_orig) + + +def test_drop_on_column(using_copy_on_write): + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [0.1, 0.2, 0.3]}) + df_orig = df.copy() + df2 = df.drop(columns="a") + df2._mgr._verify_integrity() + + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "b"), get_array(df, "b")) + assert np.shares_memory(get_array(df2, "c"), get_array(df, "c")) + else: + assert not np.shares_memory(get_array(df2, "b"), get_array(df, "b")) + assert not np.shares_memory(get_array(df2, "c"), get_array(df, "c")) + df2.iloc[0, 0] = 0 + assert not np.shares_memory(get_array(df2, "b"), get_array(df, "b")) + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "c"), get_array(df, "c")) + tm.assert_frame_equal(df, df_orig) + + +def test_select_dtypes(using_copy_on_write): + # Case: selecting columns using `select_dtypes()` returns a new dataframe + # + afterwards modifying the result + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [0.1, 0.2, 0.3]}) + df_orig = df.copy() + df2 = df.select_dtypes("int64") + df2._mgr._verify_integrity() + + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + # mutating df2 triggers a copy-on-write for that column/block + df2.iloc[0, 0] = 0 + if using_copy_on_write: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + tm.assert_frame_equal(df, df_orig) + + +@pytest.mark.parametrize( + "filter_kwargs", [{"items": ["a"]}, {"like": "a"}, {"regex": "a"}] +) +def test_filter(using_copy_on_write, filter_kwargs): + # Case: selecting columns using `filter()` returns a new dataframe + # + afterwards modifying the result + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [0.1, 0.2, 0.3]}) + df_orig = df.copy() + df2 = df.filter(**filter_kwargs) + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + # mutating df2 triggers a copy-on-write for that column/block + if using_copy_on_write: + df2.iloc[0, 0] = 0 + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + tm.assert_frame_equal(df, df_orig) + + +def test_shift_no_op(using_copy_on_write): + df = DataFrame( + [[1, 2], [3, 4], [5, 6]], + index=date_range("2020-01-01", "2020-01-03"), + columns=["a", "b"], + ) + df_orig = df.copy() + df2 = df.shift(periods=0) + + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + df.iloc[0, 0] = 0 + if using_copy_on_write: + assert not np.shares_memory(get_array(df, "a"), get_array(df2, "a")) + assert np.shares_memory(get_array(df, "b"), get_array(df2, "b")) + tm.assert_frame_equal(df2, df_orig) + + +def test_shift_index(using_copy_on_write): + df = DataFrame( + [[1, 2], [3, 4], [5, 6]], + index=date_range("2020-01-01", "2020-01-03"), + columns=["a", "b"], + ) + df2 = df.shift(periods=1, axis=0) + + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + +def test_shift_rows_freq(using_copy_on_write): + df = DataFrame( + [[1, 2], [3, 4], [5, 6]], + index=date_range("2020-01-01", "2020-01-03"), + columns=["a", "b"], + ) + df_orig = df.copy() + df_orig.index = date_range("2020-01-02", "2020-01-04") + df2 = df.shift(periods=1, freq="1D") + + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + df.iloc[0, 0] = 0 + if using_copy_on_write: + assert not np.shares_memory(get_array(df, "a"), get_array(df2, "a")) + tm.assert_frame_equal(df2, df_orig) + + +def test_shift_columns(using_copy_on_write, warn_copy_on_write): + df = DataFrame( + [[1, 2], [3, 4], [5, 6]], columns=date_range("2020-01-01", "2020-01-02") + ) + df2 = df.shift(periods=1, axis=1) + + assert np.shares_memory(get_array(df2, "2020-01-02"), get_array(df, "2020-01-01")) + with tm.assert_cow_warning(warn_copy_on_write): + df.iloc[0, 0] = 0 + if using_copy_on_write: + assert not np.shares_memory( + get_array(df2, "2020-01-02"), get_array(df, "2020-01-01") + ) + expected = DataFrame( + [[np.nan, 1], [np.nan, 3], [np.nan, 5]], + columns=date_range("2020-01-01", "2020-01-02"), + ) + tm.assert_frame_equal(df2, expected) + + +def test_pop(using_copy_on_write, warn_copy_on_write): + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [0.1, 0.2, 0.3]}) + df_orig = df.copy() + view_original = df[:] + result = df.pop("a") + + assert np.shares_memory(result.values, get_array(view_original, "a")) + assert np.shares_memory(get_array(df, "b"), get_array(view_original, "b")) + + if using_copy_on_write: + result.iloc[0] = 0 + assert not np.shares_memory(result.values, get_array(view_original, "a")) + with tm.assert_cow_warning(warn_copy_on_write): + df.iloc[0, 0] = 0 + if using_copy_on_write: + assert not np.shares_memory(get_array(df, "b"), get_array(view_original, "b")) + tm.assert_frame_equal(view_original, df_orig) + else: + expected = DataFrame({"a": [1, 2, 3], "b": [0, 5, 6], "c": [0.1, 0.2, 0.3]}) + tm.assert_frame_equal(view_original, expected) + + +@pytest.mark.parametrize( + "func", + [ + lambda x, y: x.align(y), + lambda x, y: x.align(y.a, axis=0), + lambda x, y: x.align(y.a.iloc[slice(0, 1)], axis=1), + ], +) +def test_align_frame(using_copy_on_write, func): + df = DataFrame({"a": [1, 2, 3], "b": "a"}) + df_orig = df.copy() + df_changed = df[["b", "a"]].copy() + df2, _ = func(df, df_changed) + + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + df2.iloc[0, 0] = 0 + if using_copy_on_write: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + tm.assert_frame_equal(df, df_orig) + + +def test_align_series(using_copy_on_write): + ser = Series([1, 2]) + ser_orig = ser.copy() + ser_other = ser.copy() + ser2, ser_other_result = ser.align(ser_other) + + if using_copy_on_write: + assert np.shares_memory(ser2.values, ser.values) + assert np.shares_memory(ser_other_result.values, ser_other.values) + else: + assert not np.shares_memory(ser2.values, ser.values) + assert not np.shares_memory(ser_other_result.values, ser_other.values) + + ser2.iloc[0] = 0 + ser_other_result.iloc[0] = 0 + if using_copy_on_write: + assert not np.shares_memory(ser2.values, ser.values) + assert not np.shares_memory(ser_other_result.values, ser_other.values) + tm.assert_series_equal(ser, ser_orig) + tm.assert_series_equal(ser_other, ser_orig) + + +def test_align_copy_false(using_copy_on_write): + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + df_orig = df.copy() + df2, df3 = df.align(df, copy=False) + + assert np.shares_memory(get_array(df, "b"), get_array(df2, "b")) + assert np.shares_memory(get_array(df, "a"), get_array(df2, "a")) + + if using_copy_on_write: + df2.loc[0, "a"] = 0 + tm.assert_frame_equal(df, df_orig) # Original is unchanged + + df3.loc[0, "a"] = 0 + tm.assert_frame_equal(df, df_orig) # Original is unchanged + + +def test_align_with_series_copy_false(using_copy_on_write): + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + ser = Series([1, 2, 3], name="x") + ser_orig = ser.copy() + df_orig = df.copy() + df2, ser2 = df.align(ser, copy=False, axis=0) + + assert np.shares_memory(get_array(df, "b"), get_array(df2, "b")) + assert np.shares_memory(get_array(df, "a"), get_array(df2, "a")) + assert np.shares_memory(get_array(ser, "x"), get_array(ser2, "x")) + + if using_copy_on_write: + df2.loc[0, "a"] = 0 + tm.assert_frame_equal(df, df_orig) # Original is unchanged + + ser2.loc[0] = 0 + tm.assert_series_equal(ser, ser_orig) # Original is unchanged + + +def test_to_frame(using_copy_on_write, warn_copy_on_write): + # Case: converting a Series to a DataFrame with to_frame + ser = Series([1, 2, 3]) + ser_orig = ser.copy() + + df = ser[:].to_frame() + + # currently this always returns a "view" + assert np.shares_memory(ser.values, get_array(df, 0)) + + with tm.assert_cow_warning(warn_copy_on_write): + df.iloc[0, 0] = 0 + + if using_copy_on_write: + # mutating df triggers a copy-on-write for that column + assert not np.shares_memory(ser.values, get_array(df, 0)) + tm.assert_series_equal(ser, ser_orig) + else: + # but currently select_dtypes() actually returns a view -> mutates parent + expected = ser_orig.copy() + expected.iloc[0] = 0 + tm.assert_series_equal(ser, expected) + + # modify original series -> don't modify dataframe + df = ser[:].to_frame() + with tm.assert_cow_warning(warn_copy_on_write): + ser.iloc[0] = 0 + + if using_copy_on_write: + tm.assert_frame_equal(df, ser_orig.to_frame()) + else: + expected = ser_orig.copy().to_frame() + expected.iloc[0, 0] = 0 + tm.assert_frame_equal(df, expected) + + +@pytest.mark.parametrize("ax", ["index", "columns"]) +def test_swapaxes_noop(using_copy_on_write, ax): + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + df_orig = df.copy() + msg = "'DataFrame.swapaxes' is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + df2 = df.swapaxes(ax, ax) + + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + # mutating df2 triggers a copy-on-write for that column/block + df2.iloc[0, 0] = 0 + if using_copy_on_write: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + tm.assert_frame_equal(df, df_orig) + + +def test_swapaxes_single_block(using_copy_on_write): + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}, index=["x", "y", "z"]) + df_orig = df.copy() + msg = "'DataFrame.swapaxes' is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + df2 = df.swapaxes("index", "columns") + + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "x"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "x"), get_array(df, "a")) + + # mutating df2 triggers a copy-on-write for that column/block + df2.iloc[0, 0] = 0 + if using_copy_on_write: + assert not np.shares_memory(get_array(df2, "x"), get_array(df, "a")) + tm.assert_frame_equal(df, df_orig) + + +def test_swapaxes_read_only_array(): + df = DataFrame({"a": [1, 2], "b": 3}) + msg = "'DataFrame.swapaxes' is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + df = df.swapaxes(axis1="index", axis2="columns") + df.iloc[0, 0] = 100 + expected = DataFrame({0: [100, 3], 1: [2, 3]}, index=["a", "b"]) + tm.assert_frame_equal(df, expected) + + +@pytest.mark.parametrize( + "method, idx", + [ + (lambda df: df.copy(deep=False).copy(deep=False), 0), + (lambda df: df.reset_index().reset_index(), 2), + (lambda df: df.rename(columns=str.upper).rename(columns=str.lower), 0), + (lambda df: df.copy(deep=False).select_dtypes(include="number"), 0), + ], + ids=["shallow-copy", "reset_index", "rename", "select_dtypes"], +) +def test_chained_methods(request, method, idx, using_copy_on_write, warn_copy_on_write): + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [0.1, 0.2, 0.3]}) + df_orig = df.copy() + + # when not using CoW, only the copy() variant actually gives a view + df2_is_view = not using_copy_on_write and request.node.callspec.id == "shallow-copy" + + # modify df2 -> don't modify df + df2 = method(df) + with tm.assert_cow_warning(warn_copy_on_write and df2_is_view): + df2.iloc[0, idx] = 0 + if not df2_is_view: + tm.assert_frame_equal(df, df_orig) + + # modify df -> don't modify df2 + df2 = method(df) + with tm.assert_cow_warning(warn_copy_on_write and df2_is_view): + df.iloc[0, 0] = 0 + if not df2_is_view: + tm.assert_frame_equal(df2.iloc[:, idx:], df_orig) + + +@pytest.mark.parametrize("obj", [Series([1, 2], name="a"), DataFrame({"a": [1, 2]})]) +def test_to_timestamp(using_copy_on_write, obj): + obj.index = Index([Period("2012-1-1", freq="D"), Period("2012-1-2", freq="D")]) + + obj_orig = obj.copy() + obj2 = obj.to_timestamp() + + if using_copy_on_write: + assert np.shares_memory(get_array(obj2, "a"), get_array(obj, "a")) + else: + assert not np.shares_memory(get_array(obj2, "a"), get_array(obj, "a")) + + # mutating obj2 triggers a copy-on-write for that column / block + obj2.iloc[0] = 0 + assert not np.shares_memory(get_array(obj2, "a"), get_array(obj, "a")) + tm.assert_equal(obj, obj_orig) + + +@pytest.mark.parametrize("obj", [Series([1, 2], name="a"), DataFrame({"a": [1, 2]})]) +def test_to_period(using_copy_on_write, obj): + obj.index = Index([Timestamp("2019-12-31"), Timestamp("2020-12-31")]) + + obj_orig = obj.copy() + obj2 = obj.to_period(freq="Y") + + if using_copy_on_write: + assert np.shares_memory(get_array(obj2, "a"), get_array(obj, "a")) + else: + assert not np.shares_memory(get_array(obj2, "a"), get_array(obj, "a")) + + # mutating obj2 triggers a copy-on-write for that column / block + obj2.iloc[0] = 0 + assert not np.shares_memory(get_array(obj2, "a"), get_array(obj, "a")) + tm.assert_equal(obj, obj_orig) + + +def test_set_index(using_copy_on_write): + # GH 49473 + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [0.1, 0.2, 0.3]}) + df_orig = df.copy() + df2 = df.set_index("a") + + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "b"), get_array(df, "b")) + else: + assert not np.shares_memory(get_array(df2, "b"), get_array(df, "b")) + + # mutating df2 triggers a copy-on-write for that column / block + df2.iloc[0, 1] = 0 + assert not np.shares_memory(get_array(df2, "c"), get_array(df, "c")) + tm.assert_frame_equal(df, df_orig) + + +def test_set_index_mutating_parent_does_not_mutate_index(): + df = DataFrame({"a": [1, 2, 3], "b": 1}) + result = df.set_index("a") + expected = result.copy() + + df.iloc[0, 0] = 100 + tm.assert_frame_equal(result, expected) + + +def test_add_prefix(using_copy_on_write): + # GH 49473 + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [0.1, 0.2, 0.3]}) + df_orig = df.copy() + df2 = df.add_prefix("CoW_") + + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "CoW_a"), get_array(df, "a")) + df2.iloc[0, 0] = 0 + + assert not np.shares_memory(get_array(df2, "CoW_a"), get_array(df, "a")) + + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "CoW_c"), get_array(df, "c")) + expected = DataFrame( + {"CoW_a": [0, 2, 3], "CoW_b": [4, 5, 6], "CoW_c": [0.1, 0.2, 0.3]} + ) + tm.assert_frame_equal(df2, expected) + tm.assert_frame_equal(df, df_orig) + + +def test_add_suffix(using_copy_on_write): + # GH 49473 + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [0.1, 0.2, 0.3]}) + df_orig = df.copy() + df2 = df.add_suffix("_CoW") + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "a_CoW"), get_array(df, "a")) + df2.iloc[0, 0] = 0 + assert not np.shares_memory(get_array(df2, "a_CoW"), get_array(df, "a")) + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "c_CoW"), get_array(df, "c")) + expected = DataFrame( + {"a_CoW": [0, 2, 3], "b_CoW": [4, 5, 6], "c_CoW": [0.1, 0.2, 0.3]} + ) + tm.assert_frame_equal(df2, expected) + tm.assert_frame_equal(df, df_orig) + + +@pytest.mark.parametrize("axis, val", [(0, 5.5), (1, np.nan)]) +def test_dropna(using_copy_on_write, axis, val): + df = DataFrame({"a": [1, 2, 3], "b": [4, val, 6], "c": "d"}) + df_orig = df.copy() + df2 = df.dropna(axis=axis) + + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + df2.iloc[0, 0] = 0 + if using_copy_on_write: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + tm.assert_frame_equal(df, df_orig) + + +@pytest.mark.parametrize("val", [5, 5.5]) +def test_dropna_series(using_copy_on_write, val): + ser = Series([1, val, 4]) + ser_orig = ser.copy() + ser2 = ser.dropna() + + if using_copy_on_write: + assert np.shares_memory(ser2.values, ser.values) + else: + assert not np.shares_memory(ser2.values, ser.values) + + ser2.iloc[0] = 0 + if using_copy_on_write: + assert not np.shares_memory(ser2.values, ser.values) + tm.assert_series_equal(ser, ser_orig) + + +@pytest.mark.parametrize( + "method", + [ + lambda df: df.head(), + lambda df: df.head(2), + lambda df: df.tail(), + lambda df: df.tail(3), + ], +) +def test_head_tail(method, using_copy_on_write, warn_copy_on_write): + df = DataFrame({"a": [1, 2, 3], "b": [0.1, 0.2, 0.3]}) + df_orig = df.copy() + df2 = method(df) + df2._mgr._verify_integrity() + + if using_copy_on_write: + # We are explicitly deviating for CoW here to make an eager copy (avoids + # tracking references for very cheap ops) + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + assert not np.shares_memory(get_array(df2, "b"), get_array(df, "b")) + + # modify df2 to trigger CoW for that block + with tm.assert_cow_warning(warn_copy_on_write): + df2.iloc[0, 0] = 0 + if using_copy_on_write: + assert not np.shares_memory(get_array(df2, "b"), get_array(df, "b")) + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + # without CoW enabled, head and tail return views. Mutating df2 also mutates df. + assert np.shares_memory(get_array(df2, "b"), get_array(df, "b")) + with tm.assert_cow_warning(warn_copy_on_write): + df2.iloc[0, 0] = 1 + tm.assert_frame_equal(df, df_orig) + + +def test_infer_objects(using_copy_on_write, using_infer_string): + df = DataFrame( + {"a": [1, 2], "b": Series(["x", "y"], dtype=object), "c": 1, "d": "x"} + ) + df_orig = df.copy() + df2 = df.infer_objects() + + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + if using_infer_string: + assert not tm.shares_memory(get_array(df2, "b"), get_array(df, "b")) + else: + assert np.shares_memory(get_array(df2, "b"), get_array(df, "b")) + + else: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + assert not np.shares_memory(get_array(df2, "b"), get_array(df, "b")) + + df2.iloc[0, 0] = 0 + df2.iloc[0, 1] = "d" + if using_copy_on_write: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + assert not np.shares_memory(get_array(df2, "b"), get_array(df, "b")) + tm.assert_frame_equal(df, df_orig) + + +def test_infer_objects_no_reference(using_copy_on_write, using_infer_string): + df = DataFrame( + { + "a": [1, 2], + "b": Series(["x", "y"], dtype=object), + "c": 1, + "d": Series( + [Timestamp("2019-12-31"), Timestamp("2020-12-31")], dtype="object" + ), + "e": Series(["z", "w"], dtype=object), + } + ) + df = df.infer_objects() + + arr_a = get_array(df, "a") + arr_b = get_array(df, "b") + arr_d = get_array(df, "d") + + df.iloc[0, 0] = 0 + df.iloc[0, 1] = "d" + df.iloc[0, 3] = Timestamp("2018-12-31") + if using_copy_on_write: + assert np.shares_memory(arr_a, get_array(df, "a")) + if using_infer_string: + # note that the underlying memory of arr_b has been copied anyway + # because of the assignment, but the EA is updated inplace so still + # appears the share memory + assert tm.shares_memory(arr_b, get_array(df, "b")) + else: + # TODO(CoW): Block splitting causes references here + assert not np.shares_memory(arr_b, get_array(df, "b")) + assert np.shares_memory(arr_d, get_array(df, "d")) + + +def test_infer_objects_reference(using_copy_on_write, using_infer_string): + df = DataFrame( + { + "a": [1, 2], + "b": Series(["x", "y"], dtype=object), + "c": 1, + "d": Series( + [Timestamp("2019-12-31"), Timestamp("2020-12-31")], dtype="object" + ), + } + ) + view = df[:] # noqa: F841 + df = df.infer_objects() + + arr_a = get_array(df, "a") + arr_b = get_array(df, "b") + arr_d = get_array(df, "d") + + df.iloc[0, 0] = 0 + df.iloc[0, 1] = "d" + df.iloc[0, 3] = Timestamp("2018-12-31") + if using_copy_on_write: + assert not np.shares_memory(arr_a, get_array(df, "a")) + if not using_infer_string or HAS_PYARROW: + assert not np.shares_memory(arr_b, get_array(df, "b")) + assert np.shares_memory(arr_d, get_array(df, "d")) + + +@pytest.mark.parametrize( + "kwargs", + [ + {"before": "a", "after": "b", "axis": 1}, + {"before": 0, "after": 1, "axis": 0}, + ], +) +def test_truncate(using_copy_on_write, kwargs): + df = DataFrame({"a": [1, 2, 3], "b": 1, "c": 2}) + df_orig = df.copy() + df2 = df.truncate(**kwargs) + df2._mgr._verify_integrity() + + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + df2.iloc[0, 0] = 0 + if using_copy_on_write: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + tm.assert_frame_equal(df, df_orig) + + +@pytest.mark.parametrize("method", ["assign", "drop_duplicates"]) +def test_assign_drop_duplicates(using_copy_on_write, method): + df = DataFrame({"a": [1, 2, 3]}) + df_orig = df.copy() + df2 = getattr(df, method)() + df2._mgr._verify_integrity() + + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + df2.iloc[0, 0] = 0 + if using_copy_on_write: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + tm.assert_frame_equal(df, df_orig) + + +@pytest.mark.parametrize("obj", [Series([1, 2]), DataFrame({"a": [1, 2]})]) +def test_take(using_copy_on_write, obj): + # Check that no copy is made when we take all rows in original order + obj_orig = obj.copy() + obj2 = obj.take([0, 1]) + + if using_copy_on_write: + assert np.shares_memory(obj2.values, obj.values) + else: + assert not np.shares_memory(obj2.values, obj.values) + + obj2.iloc[0] = 0 + if using_copy_on_write: + assert not np.shares_memory(obj2.values, obj.values) + tm.assert_equal(obj, obj_orig) + + +@pytest.mark.parametrize("obj", [Series([1, 2]), DataFrame({"a": [1, 2]})]) +def test_between_time(using_copy_on_write, obj): + obj.index = date_range("2018-04-09", periods=2, freq="1D20min") + obj_orig = obj.copy() + obj2 = obj.between_time("0:00", "1:00") + + if using_copy_on_write: + assert np.shares_memory(obj2.values, obj.values) + else: + assert not np.shares_memory(obj2.values, obj.values) + + obj2.iloc[0] = 0 + if using_copy_on_write: + assert not np.shares_memory(obj2.values, obj.values) + tm.assert_equal(obj, obj_orig) + + +def test_reindex_like(using_copy_on_write): + df = DataFrame({"a": [1, 2], "b": "a"}) + other = DataFrame({"b": "a", "a": [1, 2]}) + + df_orig = df.copy() + df2 = df.reindex_like(other) + + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + df2.iloc[0, 1] = 0 + if using_copy_on_write: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + tm.assert_frame_equal(df, df_orig) + + +def test_sort_index(using_copy_on_write): + # GH 49473 + ser = Series([1, 2, 3]) + ser_orig = ser.copy() + ser2 = ser.sort_index() + + if using_copy_on_write: + assert np.shares_memory(ser.values, ser2.values) + else: + assert not np.shares_memory(ser.values, ser2.values) + + # mutating ser triggers a copy-on-write for the column / block + ser2.iloc[0] = 0 + assert not np.shares_memory(ser2.values, ser.values) + tm.assert_series_equal(ser, ser_orig) + + +@pytest.mark.parametrize( + "obj, kwargs", + [(Series([1, 2, 3], name="a"), {}), (DataFrame({"a": [1, 2, 3]}), {"by": "a"})], +) +def test_sort_values(using_copy_on_write, obj, kwargs): + obj_orig = obj.copy() + obj2 = obj.sort_values(**kwargs) + + if using_copy_on_write: + assert np.shares_memory(get_array(obj2, "a"), get_array(obj, "a")) + else: + assert not np.shares_memory(get_array(obj2, "a"), get_array(obj, "a")) + + # mutating df triggers a copy-on-write for the column / block + obj2.iloc[0] = 0 + assert not np.shares_memory(get_array(obj2, "a"), get_array(obj, "a")) + tm.assert_equal(obj, obj_orig) + + +@pytest.mark.parametrize( + "obj, kwargs", + [(Series([1, 2, 3], name="a"), {}), (DataFrame({"a": [1, 2, 3]}), {"by": "a"})], +) +def test_sort_values_inplace(using_copy_on_write, obj, kwargs, warn_copy_on_write): + obj_orig = obj.copy() + view = obj[:] + obj.sort_values(inplace=True, **kwargs) + + assert np.shares_memory(get_array(obj, "a"), get_array(view, "a")) + + # mutating obj triggers a copy-on-write for the column / block + with tm.assert_cow_warning(warn_copy_on_write): + obj.iloc[0] = 0 + if using_copy_on_write: + assert not np.shares_memory(get_array(obj, "a"), get_array(view, "a")) + tm.assert_equal(view, obj_orig) + else: + assert np.shares_memory(get_array(obj, "a"), get_array(view, "a")) + + +@pytest.mark.parametrize("decimals", [-1, 0, 1]) +def test_round(using_copy_on_write, warn_copy_on_write, decimals): + df = DataFrame({"a": [1, 2], "b": "c"}) + df_orig = df.copy() + df2 = df.round(decimals=decimals) + + if using_copy_on_write: + assert tm.shares_memory(get_array(df2, "b"), get_array(df, "b")) + # TODO: Make inplace by using out parameter of ndarray.round? + if decimals >= 0 and Version(np.__version__) < Version("2.4.0.dev0"): + # Ensure lazy copy if no-op + # TODO: Cannot rely on Numpy returning view after version 2.3 + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "b"), get_array(df, "b")) + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + df2.iloc[0, 1] = "d" + df2.iloc[0, 0] = 4 + if using_copy_on_write: + assert not np.shares_memory(get_array(df2, "b"), get_array(df, "b")) + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + tm.assert_frame_equal(df, df_orig) + + +def test_reorder_levels(using_copy_on_write): + index = MultiIndex.from_tuples( + [(1, 1), (1, 2), (2, 1), (2, 2)], names=["one", "two"] + ) + df = DataFrame({"a": [1, 2, 3, 4]}, index=index) + df_orig = df.copy() + df2 = df.reorder_levels(order=["two", "one"]) + + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + df2.iloc[0, 0] = 0 + if using_copy_on_write: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + tm.assert_frame_equal(df, df_orig) + + +def test_series_reorder_levels(using_copy_on_write): + index = MultiIndex.from_tuples( + [(1, 1), (1, 2), (2, 1), (2, 2)], names=["one", "two"] + ) + ser = Series([1, 2, 3, 4], index=index) + ser_orig = ser.copy() + ser2 = ser.reorder_levels(order=["two", "one"]) + + if using_copy_on_write: + assert np.shares_memory(ser2.values, ser.values) + else: + assert not np.shares_memory(ser2.values, ser.values) + + ser2.iloc[0] = 0 + if using_copy_on_write: + assert not np.shares_memory(ser2.values, ser.values) + tm.assert_series_equal(ser, ser_orig) + + +@pytest.mark.parametrize("obj", [Series([1, 2, 3]), DataFrame({"a": [1, 2, 3]})]) +def test_swaplevel(using_copy_on_write, obj): + index = MultiIndex.from_tuples([(1, 1), (1, 2), (2, 1)], names=["one", "two"]) + obj.index = index + obj_orig = obj.copy() + obj2 = obj.swaplevel() + + if using_copy_on_write: + assert np.shares_memory(obj2.values, obj.values) + else: + assert not np.shares_memory(obj2.values, obj.values) + + obj2.iloc[0] = 0 + if using_copy_on_write: + assert not np.shares_memory(obj2.values, obj.values) + tm.assert_equal(obj, obj_orig) + + +def test_frame_set_axis(using_copy_on_write): + # GH 49473 + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [0.1, 0.2, 0.3]}) + df_orig = df.copy() + df2 = df.set_axis(["a", "b", "c"], axis="index") + + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + # mutating df2 triggers a copy-on-write for that column / block + df2.iloc[0, 0] = 0 + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + tm.assert_frame_equal(df, df_orig) + + +def test_series_set_axis(using_copy_on_write): + # GH 49473 + ser = Series([1, 2, 3]) + ser_orig = ser.copy() + ser2 = ser.set_axis(["a", "b", "c"], axis="index") + + if using_copy_on_write: + assert np.shares_memory(ser, ser2) + else: + assert not np.shares_memory(ser, ser2) + + # mutating ser triggers a copy-on-write for the column / block + ser2.iloc[0] = 0 + assert not np.shares_memory(ser2, ser) + tm.assert_series_equal(ser, ser_orig) + + +def test_set_flags(using_copy_on_write, warn_copy_on_write): + ser = Series([1, 2, 3]) + ser_orig = ser.copy() + ser2 = ser.set_flags(allows_duplicate_labels=False) + + assert np.shares_memory(ser, ser2) + + # mutating ser triggers a copy-on-write for the column / block + with tm.assert_cow_warning(warn_copy_on_write): + ser2.iloc[0] = 0 + if using_copy_on_write: + assert not np.shares_memory(ser2, ser) + tm.assert_series_equal(ser, ser_orig) + else: + assert np.shares_memory(ser2, ser) + expected = Series([0, 2, 3]) + tm.assert_series_equal(ser, expected) + + +@pytest.mark.parametrize("kwargs", [{"mapper": "test"}, {"index": "test"}]) +def test_rename_axis(using_copy_on_write, kwargs): + df = DataFrame({"a": [1, 2, 3, 4]}, index=Index([1, 2, 3, 4], name="a")) + df_orig = df.copy() + df2 = df.rename_axis(**kwargs) + + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + df2.iloc[0, 0] = 0 + if using_copy_on_write: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + tm.assert_frame_equal(df, df_orig) + + +@pytest.mark.parametrize( + "func, tz", [("tz_convert", "Europe/Berlin"), ("tz_localize", None)] +) +def test_tz_convert_localize(using_copy_on_write, func, tz): + # GH 49473 + ser = Series( + [1, 2], index=date_range(start="2014-08-01 09:00", freq="h", periods=2, tz=tz) + ) + ser_orig = ser.copy() + ser2 = getattr(ser, func)("US/Central") + + if using_copy_on_write: + assert np.shares_memory(ser.values, ser2.values) + else: + assert not np.shares_memory(ser.values, ser2.values) + + # mutating ser triggers a copy-on-write for the column / block + ser2.iloc[0] = 0 + assert not np.shares_memory(ser2.values, ser.values) + tm.assert_series_equal(ser, ser_orig) + + +def test_droplevel(using_copy_on_write): + # GH 49473 + index = MultiIndex.from_tuples([(1, 1), (1, 2), (2, 1)], names=["one", "two"]) + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [7, 8, 9]}, index=index) + df_orig = df.copy() + df2 = df.droplevel(0) + + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "c"), get_array(df, "c")) + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "c"), get_array(df, "c")) + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + # mutating df2 triggers a copy-on-write for that column / block + df2.iloc[0, 0] = 0 + + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "b"), get_array(df, "b")) + + tm.assert_frame_equal(df, df_orig) + + +def test_squeeze(using_copy_on_write, warn_copy_on_write): + df = DataFrame({"a": [1, 2, 3]}) + df_orig = df.copy() + series = df.squeeze() + + # Should share memory regardless of CoW since squeeze is just an iloc + assert np.shares_memory(series.values, get_array(df, "a")) + + # mutating squeezed df triggers a copy-on-write for that column/block + with tm.assert_cow_warning(warn_copy_on_write): + series.iloc[0] = 0 + if using_copy_on_write: + assert not np.shares_memory(series.values, get_array(df, "a")) + tm.assert_frame_equal(df, df_orig) + else: + # Without CoW the original will be modified + assert np.shares_memory(series.values, get_array(df, "a")) + assert df.loc[0, "a"] == 0 + + +def test_items(using_copy_on_write, warn_copy_on_write): + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [7, 8, 9]}) + df_orig = df.copy() + + # Test this twice, since the second time, the item cache will be + # triggered, and we want to make sure it still works then. + for i in range(2): + for name, ser in df.items(): + assert np.shares_memory(get_array(ser, name), get_array(df, name)) + + # mutating df triggers a copy-on-write for that column / block + with tm.assert_cow_warning(warn_copy_on_write): + ser.iloc[0] = 0 + + if using_copy_on_write: + assert not np.shares_memory(get_array(ser, name), get_array(df, name)) + tm.assert_frame_equal(df, df_orig) + else: + # Original frame will be modified + assert df.loc[0, name] == 0 + + +@pytest.mark.parametrize("dtype", ["int64", "Int64"]) +def test_putmask(using_copy_on_write, dtype, warn_copy_on_write): + df = DataFrame({"a": [1, 2], "b": 1, "c": 2}, dtype=dtype) + view = df[:] + df_orig = df.copy() + with tm.assert_cow_warning(warn_copy_on_write): + df[df == df] = 5 + + if using_copy_on_write: + assert not np.shares_memory(get_array(view, "a"), get_array(df, "a")) + tm.assert_frame_equal(view, df_orig) + else: + # Without CoW the original will be modified + assert np.shares_memory(get_array(view, "a"), get_array(df, "a")) + assert view.iloc[0, 0] == 5 + + +@pytest.mark.parametrize("dtype", ["int64", "Int64"]) +def test_putmask_no_reference(using_copy_on_write, dtype): + df = DataFrame({"a": [1, 2], "b": 1, "c": 2}, dtype=dtype) + arr_a = get_array(df, "a") + df[df == df] = 5 + + if using_copy_on_write: + assert np.shares_memory(arr_a, get_array(df, "a")) + + +@pytest.mark.parametrize("dtype", ["float64", "Float64"]) +def test_putmask_aligns_rhs_no_reference(using_copy_on_write, dtype): + df = DataFrame({"a": [1.5, 2], "b": 1.5}, dtype=dtype) + arr_a = get_array(df, "a") + df[df == df] = DataFrame({"a": [5.5, 5]}) + + if using_copy_on_write: + assert np.shares_memory(arr_a, get_array(df, "a")) + + +@pytest.mark.parametrize( + "val, exp, warn", [(5.5, True, FutureWarning), (5, False, None)] +) +def test_putmask_dont_copy_some_blocks( + using_copy_on_write, val, exp, warn, warn_copy_on_write +): + df = DataFrame({"a": [1, 2], "b": 1, "c": 1.5}) + view = df[:] + df_orig = df.copy() + indexer = DataFrame( + [[True, False, False], [True, False, False]], columns=list("abc") + ) + if warn_copy_on_write: + with tm.assert_cow_warning(): + df[indexer] = val + else: + with tm.assert_produces_warning(warn, match="incompatible dtype"): + df[indexer] = val + + if using_copy_on_write: + assert not np.shares_memory(get_array(view, "a"), get_array(df, "a")) + # TODO(CoW): Could split blocks to avoid copying the whole block + assert np.shares_memory(get_array(view, "b"), get_array(df, "b")) is exp + assert np.shares_memory(get_array(view, "c"), get_array(df, "c")) + assert df._mgr._has_no_reference(1) is not exp + assert not df._mgr._has_no_reference(2) + tm.assert_frame_equal(view, df_orig) + elif val == 5: + # Without CoW the original will be modified, the other case upcasts, e.g. copy + assert np.shares_memory(get_array(view, "a"), get_array(df, "a")) + assert np.shares_memory(get_array(view, "c"), get_array(df, "c")) + assert view.iloc[0, 0] == 5 + + +@pytest.mark.parametrize("dtype", ["int64", "Int64"]) +@pytest.mark.parametrize( + "func", + [ + lambda ser: ser.where(ser > 0, 10), + lambda ser: ser.mask(ser <= 0, 10), + ], +) +def test_where_mask_noop(using_copy_on_write, dtype, func): + ser = Series([1, 2, 3], dtype=dtype) + ser_orig = ser.copy() + + result = func(ser) + + if using_copy_on_write: + assert np.shares_memory(get_array(ser), get_array(result)) + else: + assert not np.shares_memory(get_array(ser), get_array(result)) + + result.iloc[0] = 10 + if using_copy_on_write: + assert not np.shares_memory(get_array(ser), get_array(result)) + tm.assert_series_equal(ser, ser_orig) + + +@pytest.mark.parametrize("dtype", ["int64", "Int64"]) +@pytest.mark.parametrize( + "func", + [ + lambda ser: ser.where(ser < 0, 10), + lambda ser: ser.mask(ser >= 0, 10), + ], +) +def test_where_mask(using_copy_on_write, dtype, func): + ser = Series([1, 2, 3], dtype=dtype) + ser_orig = ser.copy() + + result = func(ser) + + assert not np.shares_memory(get_array(ser), get_array(result)) + tm.assert_series_equal(ser, ser_orig) + + +@pytest.mark.parametrize("dtype, val", [("int64", 10.5), ("Int64", 10)]) +@pytest.mark.parametrize( + "func", + [ + lambda df, val: df.where(df < 0, val), + lambda df, val: df.mask(df >= 0, val), + ], +) +def test_where_mask_noop_on_single_column(using_copy_on_write, dtype, val, func): + df = DataFrame({"a": [1, 2, 3], "b": [-4, -5, -6]}, dtype=dtype) + df_orig = df.copy() + + result = func(df, val) + + if using_copy_on_write: + assert np.shares_memory(get_array(df, "b"), get_array(result, "b")) + assert not np.shares_memory(get_array(df, "a"), get_array(result, "a")) + else: + assert not np.shares_memory(get_array(df, "b"), get_array(result, "b")) + + result.iloc[0, 1] = 10 + if using_copy_on_write: + assert not np.shares_memory(get_array(df, "b"), get_array(result, "b")) + tm.assert_frame_equal(df, df_orig) + + +@pytest.mark.parametrize("func", ["mask", "where"]) +def test_chained_where_mask(using_copy_on_write, func): + df = DataFrame({"a": [1, 4, 2], "b": 1}) + df_orig = df.copy() + if using_copy_on_write: + with tm.raises_chained_assignment_error(): + getattr(df["a"], func)(df["a"] > 2, 5, inplace=True) + tm.assert_frame_equal(df, df_orig) + + with tm.raises_chained_assignment_error(): + getattr(df[["a"]], func)(df["a"] > 2, 5, inplace=True) + tm.assert_frame_equal(df, df_orig) + else: + with tm.assert_produces_warning( + FutureWarning if not WARNING_CHECK_DISABLED else None, + match="inplace method", + ): + getattr(df["a"], func)(df["a"] > 2, 5, inplace=True) + + with tm.assert_produces_warning(None): + with option_context("mode.chained_assignment", None): + getattr(df[["a"]], func)(df["a"] > 2, 5, inplace=True) + + with tm.assert_produces_warning(None): + with option_context("mode.chained_assignment", None): + getattr(df[df["a"] > 1], func)(df["a"] > 2, 5, inplace=True) + + +def test_asfreq_noop(using_copy_on_write): + df = DataFrame( + {"a": [0.0, None, 2.0, 3.0]}, + index=date_range("1/1/2000", periods=4, freq="min"), + ) + df_orig = df.copy() + df2 = df.asfreq(freq="min") + + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + # mutating df2 triggers a copy-on-write for that column / block + df2.iloc[0, 0] = 0 + + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + tm.assert_frame_equal(df, df_orig) + + +def test_iterrows(using_copy_on_write): + df = DataFrame({"a": 0, "b": 1}, index=[1, 2, 3]) + df_orig = df.copy() + + for _, sub in df.iterrows(): + sub.iloc[0] = 100 + if using_copy_on_write: + tm.assert_frame_equal(df, df_orig) + + +def test_interpolate_creates_copy(using_copy_on_write, warn_copy_on_write): + # GH#51126 + df = DataFrame({"a": [1.5, np.nan, 3]}) + view = df[:] + expected = df.copy() + + with tm.assert_cow_warning(warn_copy_on_write): + df.ffill(inplace=True) + with tm.assert_cow_warning(warn_copy_on_write): + df.iloc[0, 0] = 100.5 + + if using_copy_on_write: + tm.assert_frame_equal(view, expected) + else: + expected = DataFrame({"a": [100.5, 1.5, 3]}) + tm.assert_frame_equal(view, expected) + + +def test_isetitem(using_copy_on_write): + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [7, 8, 9]}) + df_orig = df.copy() + df2 = df.copy(deep=None) # Trigger a CoW + df2.isetitem(1, np.array([-1, -2, -3])) # This is inplace + + if using_copy_on_write: + assert np.shares_memory(get_array(df, "c"), get_array(df2, "c")) + assert np.shares_memory(get_array(df, "a"), get_array(df2, "a")) + else: + assert not np.shares_memory(get_array(df, "c"), get_array(df2, "c")) + assert not np.shares_memory(get_array(df, "a"), get_array(df2, "a")) + + df2.loc[0, "a"] = 0 + tm.assert_frame_equal(df, df_orig) # Original is unchanged + + if using_copy_on_write: + assert np.shares_memory(get_array(df, "c"), get_array(df2, "c")) + else: + assert not np.shares_memory(get_array(df, "c"), get_array(df2, "c")) + + +@pytest.mark.parametrize( + "dtype", ["int64", "float64"], ids=["single-block", "mixed-block"] +) +def test_isetitem_series(using_copy_on_write, dtype): + df = DataFrame({"a": [1, 2, 3], "b": np.array([4, 5, 6], dtype=dtype)}) + ser = Series([7, 8, 9]) + ser_orig = ser.copy() + df.isetitem(0, ser) + + if using_copy_on_write: + assert np.shares_memory(get_array(df, "a"), get_array(ser)) + assert not df._mgr._has_no_reference(0) + + # mutating dataframe doesn't update series + df.loc[0, "a"] = 0 + tm.assert_series_equal(ser, ser_orig) + + # mutating series doesn't update dataframe + df = DataFrame({"a": [1, 2, 3], "b": np.array([4, 5, 6], dtype=dtype)}) + ser = Series([7, 8, 9]) + df.isetitem(0, ser) + + ser.loc[0] = 0 + expected = DataFrame({"a": [7, 8, 9], "b": np.array([4, 5, 6], dtype=dtype)}) + tm.assert_frame_equal(df, expected) + + +def test_isetitem_frame(using_copy_on_write): + df = DataFrame({"a": [1, 2, 3], "b": 1, "c": 2}) + rhs = DataFrame({"a": [4, 5, 6], "b": 2}) + df.isetitem([0, 1], rhs) + if using_copy_on_write: + assert np.shares_memory(get_array(df, "a"), get_array(rhs, "a")) + assert np.shares_memory(get_array(df, "b"), get_array(rhs, "b")) + assert not df._mgr._has_no_reference(0) + else: + assert not np.shares_memory(get_array(df, "a"), get_array(rhs, "a")) + assert not np.shares_memory(get_array(df, "b"), get_array(rhs, "b")) + expected = df.copy() + rhs.iloc[0, 0] = 100 + rhs.iloc[0, 1] = 100 + tm.assert_frame_equal(df, expected) + + +@pytest.mark.parametrize("key", ["a", ["a"]]) +def test_get(using_copy_on_write, warn_copy_on_write, key): + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + df_orig = df.copy() + + result = df.get(key) + + if using_copy_on_write: + assert np.shares_memory(get_array(result, "a"), get_array(df, "a")) + result.iloc[0] = 0 + assert not np.shares_memory(get_array(result, "a"), get_array(df, "a")) + tm.assert_frame_equal(df, df_orig) + else: + # for non-CoW it depends on whether we got a Series or DataFrame if it + # is a view or copy or triggers a warning or not + if warn_copy_on_write: + warn = FutureWarning if isinstance(key, str) else None + else: + warn = SettingWithCopyWarning if isinstance(key, list) else None + with option_context("chained_assignment", "warn"): + with tm.assert_produces_warning(warn): + result.iloc[0] = 0 + + if isinstance(key, list): + tm.assert_frame_equal(df, df_orig) + else: + assert df.iloc[0, 0] == 0 + + +@pytest.mark.parametrize("axis, key", [(0, 0), (1, "a")]) +@pytest.mark.parametrize( + "dtype", ["int64", "float64"], ids=["single-block", "mixed-block"] +) +def test_xs( + using_copy_on_write, warn_copy_on_write, using_array_manager, axis, key, dtype +): + single_block = (dtype == "int64") and not using_array_manager + is_view = single_block or (using_array_manager and axis == 1) + df = DataFrame( + {"a": [1, 2, 3], "b": [4, 5, 6], "c": np.array([7, 8, 9], dtype=dtype)} + ) + df_orig = df.copy() + + result = df.xs(key, axis=axis) + + if axis == 1 or single_block: + assert np.shares_memory(get_array(df, "a"), get_array(result)) + elif using_copy_on_write: + assert result._mgr._has_no_reference(0) + + if using_copy_on_write or (is_view and not warn_copy_on_write): + result.iloc[0] = 0 + elif warn_copy_on_write: + with tm.assert_cow_warning(single_block or axis == 1): + result.iloc[0] = 0 + else: + with option_context("chained_assignment", "warn"): + with tm.assert_produces_warning(SettingWithCopyWarning): + result.iloc[0] = 0 + + if using_copy_on_write or (not single_block and axis == 0): + tm.assert_frame_equal(df, df_orig) + else: + assert df.iloc[0, 0] == 0 + + +@pytest.mark.parametrize("axis", [0, 1]) +@pytest.mark.parametrize("key, level", [("l1", 0), (2, 1)]) +def test_xs_multiindex( + using_copy_on_write, warn_copy_on_write, using_array_manager, key, level, axis +): + arr = np.arange(18).reshape(6, 3) + index = MultiIndex.from_product([["l1", "l2"], [1, 2, 3]], names=["lev1", "lev2"]) + df = DataFrame(arr, index=index, columns=list("abc")) + if axis == 1: + df = df.transpose().copy() + df_orig = df.copy() + + result = df.xs(key, level=level, axis=axis) + + if level == 0: + assert np.shares_memory( + get_array(df, df.columns[0]), get_array(result, result.columns[0]) + ) + + if warn_copy_on_write: + warn = FutureWarning if level == 0 else None + elif not using_copy_on_write and not using_array_manager: + warn = SettingWithCopyWarning + else: + warn = None + with option_context("chained_assignment", "warn"): + with tm.assert_produces_warning(warn): + result.iloc[0, 0] = 0 + + tm.assert_frame_equal(df, df_orig) + + +def test_update_frame(using_copy_on_write, warn_copy_on_write): + df1 = DataFrame({"a": [1.0, 2.0, 3.0], "b": [4.0, 5.0, 6.0]}) + df2 = DataFrame({"b": [100.0]}, index=[1]) + df1_orig = df1.copy() + view = df1[:] + + # TODO(CoW) better warning message? + with tm.assert_cow_warning(warn_copy_on_write): + df1.update(df2) + + expected = DataFrame({"a": [1.0, 2.0, 3.0], "b": [4.0, 100.0, 6.0]}) + tm.assert_frame_equal(df1, expected) + if using_copy_on_write: + # df1 is updated, but its view not + tm.assert_frame_equal(view, df1_orig) + assert np.shares_memory(get_array(df1, "a"), get_array(view, "a")) + assert not np.shares_memory(get_array(df1, "b"), get_array(view, "b")) + else: + tm.assert_frame_equal(view, expected) + + +def test_update_series(using_copy_on_write, warn_copy_on_write): + ser1 = Series([1.0, 2.0, 3.0]) + ser2 = Series([100.0], index=[1]) + ser1_orig = ser1.copy() + view = ser1[:] + + if warn_copy_on_write: + with tm.assert_cow_warning(): + ser1.update(ser2) + else: + ser1.update(ser2) + + expected = Series([1.0, 100.0, 3.0]) + tm.assert_series_equal(ser1, expected) + if using_copy_on_write: + # ser1 is updated, but its view not + tm.assert_series_equal(view, ser1_orig) + else: + tm.assert_series_equal(view, expected) + + +def test_update_chained_assignment(using_copy_on_write): + df = DataFrame({"a": [1, 2, 3]}) + ser2 = Series([100.0], index=[1]) + df_orig = df.copy() + if using_copy_on_write: + with tm.raises_chained_assignment_error(): + df["a"].update(ser2) + tm.assert_frame_equal(df, df_orig) + + with tm.raises_chained_assignment_error(): + df[["a"]].update(ser2.to_frame()) + tm.assert_frame_equal(df, df_orig) + else: + with tm.assert_produces_warning( + FutureWarning if not WARNING_CHECK_DISABLED else None, + match="inplace method", + ): + df["a"].update(ser2) + + with tm.assert_produces_warning(None): + with option_context("mode.chained_assignment", None): + df[["a"]].update(ser2.to_frame()) + + with tm.assert_produces_warning(None): + with option_context("mode.chained_assignment", None): + df[df["a"] > 1].update(ser2.to_frame()) + + +def test_inplace_arithmetic_series(using_copy_on_write): + ser = Series([1, 2, 3]) + ser_orig = ser.copy() + data = get_array(ser) + ser *= 2 + if using_copy_on_write: + # https://github.com/pandas-dev/pandas/pull/55745 + # changed to NOT update inplace because there is no benefit (actual + # operation already done non-inplace). This was only for the optics + # of updating the backing array inplace, but we no longer want to make + # that guarantee + assert not np.shares_memory(get_array(ser), data) + tm.assert_numpy_array_equal(data, get_array(ser_orig)) + else: + assert np.shares_memory(get_array(ser), data) + tm.assert_numpy_array_equal(data, get_array(ser)) + + +def test_inplace_arithmetic_series_with_reference( + using_copy_on_write, warn_copy_on_write +): + ser = Series([1, 2, 3]) + ser_orig = ser.copy() + view = ser[:] + with tm.assert_cow_warning(warn_copy_on_write): + ser *= 2 + if using_copy_on_write: + assert not np.shares_memory(get_array(ser), get_array(view)) + tm.assert_series_equal(ser_orig, view) + else: + assert np.shares_memory(get_array(ser), get_array(view)) + + +@pytest.mark.parametrize("copy", [True, False]) +def test_transpose(using_copy_on_write, copy, using_array_manager): + df = DataFrame({"a": [1, 2, 3], "b": 1}) + df_orig = df.copy() + result = df.transpose(copy=copy) + + if not copy and not using_array_manager or using_copy_on_write: + assert np.shares_memory(get_array(df, "a"), get_array(result, 0)) + else: + assert not np.shares_memory(get_array(df, "a"), get_array(result, 0)) + + result.iloc[0, 0] = 100 + if using_copy_on_write: + tm.assert_frame_equal(df, df_orig) + + +def test_transpose_different_dtypes(using_copy_on_write): + df = DataFrame({"a": [1, 2, 3], "b": 1.5}) + df_orig = df.copy() + result = df.T + + assert not np.shares_memory(get_array(df, "a"), get_array(result, 0)) + result.iloc[0, 0] = 100 + if using_copy_on_write: + tm.assert_frame_equal(df, df_orig) + + +def test_transpose_ea_single_column(using_copy_on_write): + df = DataFrame({"a": [1, 2, 3]}, dtype="Int64") + result = df.T + + assert not np.shares_memory(get_array(df, "a"), get_array(result, 0)) + + +def test_transform_frame(using_copy_on_write, warn_copy_on_write): + df = DataFrame({"a": [1, 2, 3], "b": 1}) + df_orig = df.copy() + + def func(ser): + ser.iloc[0] = 100 + return ser + + with tm.assert_cow_warning(warn_copy_on_write): + df.transform(func) + if using_copy_on_write: + tm.assert_frame_equal(df, df_orig) + + +def test_transform_series(using_copy_on_write, warn_copy_on_write): + ser = Series([1, 2, 3]) + ser_orig = ser.copy() + + def func(ser): + ser.iloc[0] = 100 + return ser + + with tm.assert_cow_warning(warn_copy_on_write): + ser.transform(func) + if using_copy_on_write: + tm.assert_series_equal(ser, ser_orig) + + +def test_count_read_only_array(): + df = DataFrame({"a": [1, 2], "b": 3}) + result = df.count() + result.iloc[0] = 100 + expected = Series([100, 2], index=["a", "b"]) + tm.assert_series_equal(result, expected) + + +def test_series_view(using_copy_on_write, warn_copy_on_write): + ser = Series([1, 2, 3]) + ser_orig = ser.copy() + + with tm.assert_produces_warning(FutureWarning, match="is deprecated"): + ser2 = ser.view() + assert np.shares_memory(get_array(ser), get_array(ser2)) + if using_copy_on_write: + assert not ser2._mgr._has_no_reference(0) + + with tm.assert_cow_warning(warn_copy_on_write): + ser2.iloc[0] = 100 + + if using_copy_on_write: + tm.assert_series_equal(ser_orig, ser) + else: + expected = Series([100, 2, 3]) + tm.assert_series_equal(ser, expected) + + +def test_insert_series(using_copy_on_write): + df = DataFrame({"a": [1, 2, 3]}) + ser = Series([1, 2, 3]) + ser_orig = ser.copy() + df.insert(loc=1, value=ser, column="b") + if using_copy_on_write: + assert np.shares_memory(get_array(ser), get_array(df, "b")) + assert not df._mgr._has_no_reference(1) + else: + assert not np.shares_memory(get_array(ser), get_array(df, "b")) + + df.iloc[0, 1] = 100 + tm.assert_series_equal(ser, ser_orig) + + +def test_eval(using_copy_on_write): + df = DataFrame({"a": [1, 2, 3], "b": 1}) + df_orig = df.copy() + + result = df.eval("c = a+b") + if using_copy_on_write: + assert np.shares_memory(get_array(df, "a"), get_array(result, "a")) + else: + assert not np.shares_memory(get_array(df, "a"), get_array(result, "a")) + + result.iloc[0, 0] = 100 + tm.assert_frame_equal(df, df_orig) + + +def test_eval_inplace(using_copy_on_write, warn_copy_on_write): + df = DataFrame({"a": [1, 2, 3], "b": 1}) + df_orig = df.copy() + df_view = df[:] + + df.eval("c = a+b", inplace=True) + assert np.shares_memory(get_array(df, "a"), get_array(df_view, "a")) + + with tm.assert_cow_warning(warn_copy_on_write): + df.iloc[0, 0] = 100 + if using_copy_on_write: + tm.assert_frame_equal(df_view, df_orig) + + +def test_apply_modify_row(using_copy_on_write, warn_copy_on_write): + # Case: applying a function on each row as a Series object, where the + # function mutates the row object (which needs to trigger CoW if row is a view) + df = DataFrame({"A": [1, 2], "B": [3, 4]}) + df_orig = df.copy() + + def transform(row): + row["B"] = 100 + return row + + with tm.assert_cow_warning(warn_copy_on_write): + df.apply(transform, axis=1) + + if using_copy_on_write: + tm.assert_frame_equal(df, df_orig) + else: + assert df.loc[0, "B"] == 100 + + # row Series is a copy + df = DataFrame({"A": [1, 2], "B": ["b", "c"]}) + df_orig = df.copy() + + with tm.assert_produces_warning(None): + df.apply(transform, axis=1) + + tm.assert_frame_equal(df, df_orig) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_replace.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_replace.py new file mode 100644 index 0000000000000000000000000000000000000000..70158141d0ceedbe39f29c2869a855647b4d1a1e --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_replace.py @@ -0,0 +1,495 @@ +import numpy as np +import pytest + +from pandas.compat import WARNING_CHECK_DISABLED + +from pandas import ( + Categorical, + DataFrame, + option_context, +) +import pandas._testing as tm +from pandas.tests.copy_view.util import get_array + + +@pytest.mark.parametrize( + "replace_kwargs", + [ + {"to_replace": {"a": 1, "b": 4}, "value": -1}, + # Test CoW splits blocks to avoid copying unchanged columns + {"to_replace": {"a": 1}, "value": -1}, + {"to_replace": {"b": 4}, "value": -1}, + {"to_replace": {"b": {4: 1}}}, + # TODO: Add these in a further optimization + # We would need to see which columns got replaced in the mask + # which could be expensive + # {"to_replace": {"b": 1}}, + # 1 + ], +) +def test_replace(using_copy_on_write, replace_kwargs): + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [0.1, 0.2, 0.3]}) + df_orig = df.copy() + + df_replaced = df.replace(**replace_kwargs) + + if using_copy_on_write: + if (df_replaced["b"] == df["b"]).all(): + assert np.shares_memory(get_array(df_replaced, "b"), get_array(df, "b")) + assert tm.shares_memory(get_array(df_replaced, "c"), get_array(df, "c")) + + # mutating squeezed df triggers a copy-on-write for that column/block + df_replaced.loc[0, "c"] = -1 + if using_copy_on_write: + assert not np.shares_memory(get_array(df_replaced, "c"), get_array(df, "c")) + + if "a" in replace_kwargs["to_replace"]: + arr = get_array(df_replaced, "a") + df_replaced.loc[0, "a"] = 100 + assert np.shares_memory(get_array(df_replaced, "a"), arr) + tm.assert_frame_equal(df, df_orig) + + +def test_replace_regex_inplace_refs(using_copy_on_write, warn_copy_on_write): + df = DataFrame({"a": ["aaa", "bbb"]}) + df_orig = df.copy() + view = df[:] + arr = get_array(df, "a") + with tm.assert_cow_warning(warn_copy_on_write): + df.replace(to_replace=r"^a.*$", value="new", inplace=True, regex=True) + if using_copy_on_write: + assert not tm.shares_memory(arr, get_array(df, "a")) + assert df._mgr._has_no_reference(0) + tm.assert_frame_equal(view, df_orig) + else: + assert np.shares_memory(arr, get_array(df, "a")) + + +def test_replace_regex_inplace(using_copy_on_write): + df = DataFrame({"a": ["aaa", "bbb"]}) + arr = get_array(df, "a") + df.replace(to_replace=r"^a.*$", value="new", inplace=True, regex=True) + if using_copy_on_write: + assert df._mgr._has_no_reference(0) + assert tm.shares_memory(arr, get_array(df, "a")) + + df_orig = df.copy() + df2 = df.replace(to_replace=r"^b.*$", value="new", regex=True) + tm.assert_frame_equal(df_orig, df) + assert not tm.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + +def test_replace_regex_inplace_no_op(using_copy_on_write): + df = DataFrame({"a": [1, 2]}) + arr = get_array(df, "a") + df.replace(to_replace=r"^a.$", value="new", inplace=True, regex=True) + if using_copy_on_write: + assert df._mgr._has_no_reference(0) + assert np.shares_memory(arr, get_array(df, "a")) + + df_orig = df.copy() + df2 = df.replace(to_replace=r"^x.$", value="new", regex=True) + tm.assert_frame_equal(df_orig, df) + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + +def test_replace_mask_all_false_second_block(using_copy_on_write): + df = DataFrame({"a": [1.5, 2, 3], "b": 100.5, "c": 1, "d": 2}) + df_orig = df.copy() + + df2 = df.replace(to_replace=1.5, value=55.5) + + if using_copy_on_write: + # TODO: Block splitting would allow us to avoid copying b + assert np.shares_memory(get_array(df, "c"), get_array(df2, "c")) + assert not np.shares_memory(get_array(df, "a"), get_array(df2, "a")) + + else: + assert not np.shares_memory(get_array(df, "c"), get_array(df2, "c")) + assert not np.shares_memory(get_array(df, "a"), get_array(df2, "a")) + + df2.loc[0, "c"] = 1 + tm.assert_frame_equal(df, df_orig) # Original is unchanged + + if using_copy_on_write: + assert not np.shares_memory(get_array(df, "c"), get_array(df2, "c")) + # TODO: This should split and not copy the whole block + # assert np.shares_memory(get_array(df, "d"), get_array(df2, "d")) + + +def test_replace_coerce_single_column(using_copy_on_write, using_array_manager): + df = DataFrame({"a": [1.5, 2, 3], "b": 100.5}) + df_orig = df.copy() + + df2 = df.replace(to_replace=1.5, value="a") + + if using_copy_on_write: + assert np.shares_memory(get_array(df, "b"), get_array(df2, "b")) + assert not np.shares_memory(get_array(df, "a"), get_array(df2, "a")) + + elif not using_array_manager: + assert np.shares_memory(get_array(df, "b"), get_array(df2, "b")) + assert not np.shares_memory(get_array(df, "a"), get_array(df2, "a")) + + if using_copy_on_write: + df2.loc[0, "b"] = 0.5 + tm.assert_frame_equal(df, df_orig) # Original is unchanged + assert not np.shares_memory(get_array(df, "b"), get_array(df2, "b")) + + +def test_replace_to_replace_wrong_dtype(using_copy_on_write): + df = DataFrame({"a": [1.5, 2, 3], "b": 100.5}) + df_orig = df.copy() + + df2 = df.replace(to_replace="xxx", value=1.5) + + if using_copy_on_write: + assert np.shares_memory(get_array(df, "b"), get_array(df2, "b")) + assert np.shares_memory(get_array(df, "a"), get_array(df2, "a")) + + else: + assert not np.shares_memory(get_array(df, "b"), get_array(df2, "b")) + assert not np.shares_memory(get_array(df, "a"), get_array(df2, "a")) + + df2.loc[0, "b"] = 0.5 + tm.assert_frame_equal(df, df_orig) # Original is unchanged + + if using_copy_on_write: + assert not np.shares_memory(get_array(df, "b"), get_array(df2, "b")) + + +def test_replace_list_categorical(using_copy_on_write): + df = DataFrame({"a": ["a", "b", "c"]}, dtype="category") + arr = get_array(df, "a") + msg = ( + r"The behavior of Series\.replace \(and DataFrame.replace\) " + "with CategoricalDtype" + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + df.replace(["c"], value="a", inplace=True) + assert np.shares_memory(arr.codes, get_array(df, "a").codes) + if using_copy_on_write: + assert df._mgr._has_no_reference(0) + + df_orig = df.copy() + with tm.assert_produces_warning(FutureWarning, match=msg): + df2 = df.replace(["b"], value="a") + assert not np.shares_memory(arr.codes, get_array(df2, "a").codes) + + tm.assert_frame_equal(df, df_orig) + + +def test_replace_list_inplace_refs_categorical(using_copy_on_write): + df = DataFrame({"a": ["a", "b", "c"]}, dtype="category") + view = df[:] + df_orig = df.copy() + msg = ( + r"The behavior of Series\.replace \(and DataFrame.replace\) " + "with CategoricalDtype" + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + df.replace(["c"], value="a", inplace=True) + if using_copy_on_write: + assert not np.shares_memory( + get_array(view, "a").codes, get_array(df, "a").codes + ) + tm.assert_frame_equal(df_orig, view) + else: + # This could be inplace + assert not np.shares_memory( + get_array(view, "a").codes, get_array(df, "a").codes + ) + + +@pytest.mark.parametrize("to_replace", [1.5, [1.5], []]) +def test_replace_inplace(using_copy_on_write, to_replace): + df = DataFrame({"a": [1.5, 2, 3]}) + arr_a = get_array(df, "a") + df.replace(to_replace=1.5, value=15.5, inplace=True) + + assert np.shares_memory(get_array(df, "a"), arr_a) + if using_copy_on_write: + assert df._mgr._has_no_reference(0) + + +@pytest.mark.parametrize("to_replace", [1.5, [1.5]]) +def test_replace_inplace_reference(using_copy_on_write, to_replace, warn_copy_on_write): + df = DataFrame({"a": [1.5, 2, 3]}) + arr_a = get_array(df, "a") + view = df[:] + with tm.assert_cow_warning(warn_copy_on_write): + df.replace(to_replace=to_replace, value=15.5, inplace=True) + + if using_copy_on_write: + assert not np.shares_memory(get_array(df, "a"), arr_a) + assert df._mgr._has_no_reference(0) + assert view._mgr._has_no_reference(0) + else: + assert np.shares_memory(get_array(df, "a"), arr_a) + + +@pytest.mark.parametrize("to_replace", ["a", 100.5]) +def test_replace_inplace_reference_no_op(using_copy_on_write, to_replace): + df = DataFrame({"a": [1.5, 2, 3]}) + arr_a = get_array(df, "a") + view = df[:] + df.replace(to_replace=to_replace, value=15.5, inplace=True) + + assert np.shares_memory(get_array(df, "a"), arr_a) + if using_copy_on_write: + assert not df._mgr._has_no_reference(0) + assert not view._mgr._has_no_reference(0) + + +@pytest.mark.parametrize("to_replace", [1, [1]]) +@pytest.mark.parametrize("val", [1, 1.5]) +def test_replace_categorical_inplace_reference(using_copy_on_write, val, to_replace): + df = DataFrame({"a": Categorical([1, 2, 3])}) + df_orig = df.copy() + arr_a = get_array(df, "a") + view = df[:] + msg = ( + r"The behavior of Series\.replace \(and DataFrame.replace\) " + "with CategoricalDtype" + ) + warn = FutureWarning if val == 1.5 else None + with tm.assert_produces_warning(warn, match=msg): + df.replace(to_replace=to_replace, value=val, inplace=True) + + if using_copy_on_write: + assert not np.shares_memory(get_array(df, "a").codes, arr_a.codes) + assert df._mgr._has_no_reference(0) + assert view._mgr._has_no_reference(0) + tm.assert_frame_equal(view, df_orig) + else: + assert np.shares_memory(get_array(df, "a").codes, arr_a.codes) + + +@pytest.mark.parametrize("val", [1, 1.5]) +def test_replace_categorical_inplace(using_copy_on_write, val): + df = DataFrame({"a": Categorical([1, 2, 3])}) + arr_a = get_array(df, "a") + msg = ( + r"The behavior of Series\.replace \(and DataFrame.replace\) " + "with CategoricalDtype" + ) + warn = FutureWarning if val == 1.5 else None + with tm.assert_produces_warning(warn, match=msg): + df.replace(to_replace=1, value=val, inplace=True) + + assert np.shares_memory(get_array(df, "a").codes, arr_a.codes) + if using_copy_on_write: + assert df._mgr._has_no_reference(0) + + expected = DataFrame({"a": Categorical([val, 2, 3])}) + tm.assert_frame_equal(df, expected) + + +@pytest.mark.parametrize("val", [1, 1.5]) +def test_replace_categorical(using_copy_on_write, val): + df = DataFrame({"a": Categorical([1, 2, 3])}) + df_orig = df.copy() + msg = ( + r"The behavior of Series\.replace \(and DataFrame.replace\) " + "with CategoricalDtype" + ) + warn = FutureWarning if val == 1.5 else None + with tm.assert_produces_warning(warn, match=msg): + df2 = df.replace(to_replace=1, value=val) + + if using_copy_on_write: + assert df._mgr._has_no_reference(0) + assert df2._mgr._has_no_reference(0) + assert not np.shares_memory(get_array(df, "a").codes, get_array(df2, "a").codes) + tm.assert_frame_equal(df, df_orig) + + arr_a = get_array(df2, "a").codes + df2.iloc[0, 0] = 2.0 + assert np.shares_memory(get_array(df2, "a").codes, arr_a) + + +@pytest.mark.parametrize("method", ["where", "mask"]) +def test_masking_inplace(using_copy_on_write, method, warn_copy_on_write): + df = DataFrame({"a": [1.5, 2, 3]}) + df_orig = df.copy() + arr_a = get_array(df, "a") + view = df[:] + + method = getattr(df, method) + if warn_copy_on_write: + with tm.assert_cow_warning(): + method(df["a"] > 1.6, -1, inplace=True) + else: + method(df["a"] > 1.6, -1, inplace=True) + + if using_copy_on_write: + assert not np.shares_memory(get_array(df, "a"), arr_a) + assert df._mgr._has_no_reference(0) + assert view._mgr._has_no_reference(0) + tm.assert_frame_equal(view, df_orig) + else: + assert np.shares_memory(get_array(df, "a"), arr_a) + + +def test_replace_empty_list(using_copy_on_write): + df = DataFrame({"a": [1, 2]}) + + df2 = df.replace([], []) + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + assert not df._mgr._has_no_reference(0) + else: + assert not np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + + arr_a = get_array(df, "a") + df.replace([], []) + if using_copy_on_write: + assert np.shares_memory(get_array(df, "a"), arr_a) + assert not df._mgr._has_no_reference(0) + assert not df2._mgr._has_no_reference(0) + + +@pytest.mark.parametrize("value", ["d", None]) +def test_replace_object_list_inplace(using_copy_on_write, value): + df = DataFrame({"a": ["a", "b", "c"]}, dtype=object) + arr = get_array(df, "a") + df.replace(["c"], value, inplace=True) + if using_copy_on_write or value is None: + assert tm.shares_memory(arr, get_array(df, "a")) + else: + # This could be inplace + assert not np.shares_memory(arr, get_array(df, "a")) + if using_copy_on_write: + assert df._mgr._has_no_reference(0) + + +def test_replace_list_multiple_elements_inplace(using_copy_on_write): + df = DataFrame({"a": [1, 2, 3]}) + arr = get_array(df, "a") + df.replace([1, 2], 4, inplace=True) + if using_copy_on_write: + assert np.shares_memory(arr, get_array(df, "a")) + assert df._mgr._has_no_reference(0) + else: + assert np.shares_memory(arr, get_array(df, "a")) + + +def test_replace_list_none(using_copy_on_write): + df = DataFrame({"a": ["a", "b", "c"]}) + + df_orig = df.copy() + df2 = df.replace(["b"], value=None) + tm.assert_frame_equal(df, df_orig) + + assert not np.shares_memory(get_array(df, "a"), get_array(df2, "a")) + + # replace multiple values that don't actually replace anything with None + # https://github.com/pandas-dev/pandas/issues/59770 + df3 = df.replace(["d", "e", "f"], value=None) + tm.assert_frame_equal(df3, df_orig) + if using_copy_on_write: + assert tm.shares_memory(get_array(df, "a"), get_array(df3, "a")) + else: + assert not tm.shares_memory(get_array(df, "a"), get_array(df3, "a")) + + +def test_replace_list_none_inplace_refs(using_copy_on_write, warn_copy_on_write): + df = DataFrame({"a": ["a", "b", "c"]}) + arr = get_array(df, "a") + df_orig = df.copy() + view = df[:] + with tm.assert_cow_warning(warn_copy_on_write): + df.replace(["a"], value=None, inplace=True) + if using_copy_on_write: + assert df._mgr._has_no_reference(0) + assert not np.shares_memory(arr, get_array(df, "a")) + tm.assert_frame_equal(df_orig, view) + else: + assert np.shares_memory(arr, get_array(df, "a")) + + +def test_replace_columnwise_no_op_inplace(using_copy_on_write): + df = DataFrame({"a": [1, 2, 3], "b": [1, 2, 3]}) + view = df[:] + df_orig = df.copy() + df.replace({"a": 10}, 100, inplace=True) + if using_copy_on_write: + assert np.shares_memory(get_array(view, "a"), get_array(df, "a")) + df.iloc[0, 0] = 100 + tm.assert_frame_equal(view, df_orig) + + +def test_replace_columnwise_no_op(using_copy_on_write): + df = DataFrame({"a": [1, 2, 3], "b": [1, 2, 3]}) + df_orig = df.copy() + df2 = df.replace({"a": 10}, 100) + if using_copy_on_write: + assert np.shares_memory(get_array(df2, "a"), get_array(df, "a")) + df2.iloc[0, 0] = 100 + tm.assert_frame_equal(df, df_orig) + + +def test_replace_chained_assignment(using_copy_on_write): + df = DataFrame({"a": [1, np.nan, 2], "b": 1}) + df_orig = df.copy() + if using_copy_on_write: + with tm.raises_chained_assignment_error(): + df["a"].replace(1, 100, inplace=True) + tm.assert_frame_equal(df, df_orig) + + with tm.raises_chained_assignment_error(): + df[["a"]].replace(1, 100, inplace=True) + tm.assert_frame_equal(df, df_orig) + else: + with tm.assert_produces_warning(None): + with option_context("mode.chained_assignment", None): + df[["a"]].replace(1, 100, inplace=True) + + with tm.assert_produces_warning(None): + with option_context("mode.chained_assignment", None): + df[df.a > 5].replace(1, 100, inplace=True) + + with tm.assert_produces_warning( + FutureWarning if not WARNING_CHECK_DISABLED else None, + match="inplace method", + ): + df["a"].replace(1, 100, inplace=True) + + +def test_replace_listlike(using_copy_on_write): + df = DataFrame({"a": [1, 2, 3], "b": [1, 2, 3]}) + df_orig = df.copy() + + result = df.replace([200, 201], [11, 11]) + if using_copy_on_write: + assert np.shares_memory(get_array(result, "a"), get_array(df, "a")) + else: + assert not np.shares_memory(get_array(result, "a"), get_array(df, "a")) + + result.iloc[0, 0] = 100 + tm.assert_frame_equal(df, df) + + result = df.replace([200, 2], [10, 10]) + assert not np.shares_memory(get_array(df, "a"), get_array(result, "a")) + tm.assert_frame_equal(df, df_orig) + + +def test_replace_listlike_inplace(using_copy_on_write, warn_copy_on_write): + df = DataFrame({"a": [1, 2, 3], "b": [1, 2, 3]}) + arr = get_array(df, "a") + df.replace([200, 2], [10, 11], inplace=True) + assert np.shares_memory(get_array(df, "a"), arr) + + view = df[:] + df_orig = df.copy() + with tm.assert_cow_warning(warn_copy_on_write): + df.replace([200, 3], [10, 11], inplace=True) + if using_copy_on_write: + assert not np.shares_memory(get_array(df, "a"), arr) + tm.assert_frame_equal(view, df_orig) + else: + assert np.shares_memory(get_array(df, "a"), arr) + tm.assert_frame_equal(df, view) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_setitem.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_setitem.py new file mode 100644 index 0000000000000000000000000000000000000000..bc3b939734534520f0cf7051dbc72989d0caf990 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_setitem.py @@ -0,0 +1,156 @@ +import numpy as np + +from pandas import ( + DataFrame, + Index, + MultiIndex, + RangeIndex, + Series, +) +import pandas._testing as tm +from pandas.tests.copy_view.util import get_array + +# ----------------------------------------------------------------------------- +# Copy/view behaviour for the values that are set in a DataFrame + + +def test_set_column_with_array(): + # Case: setting an array as a new column (df[col] = arr) copies that data + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + arr = np.array([1, 2, 3], dtype="int64") + + df["c"] = arr + + # the array data is copied + assert not np.shares_memory(get_array(df, "c"), arr) + # and thus modifying the array does not modify the DataFrame + arr[0] = 0 + tm.assert_series_equal(df["c"], Series([1, 2, 3], name="c")) + + +def test_set_column_with_series(using_copy_on_write): + # Case: setting a series as a new column (df[col] = s) copies that data + # (with delayed copy with CoW) + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + ser = Series([1, 2, 3]) + + df["c"] = ser + + if using_copy_on_write: + assert np.shares_memory(get_array(df, "c"), get_array(ser)) + else: + # the series data is copied + assert not np.shares_memory(get_array(df, "c"), get_array(ser)) + + # and modifying the series does not modify the DataFrame + ser.iloc[0] = 0 + assert ser.iloc[0] == 0 + tm.assert_series_equal(df["c"], Series([1, 2, 3], name="c")) + + +def test_set_column_with_index(using_copy_on_write): + # Case: setting an index as a new column (df[col] = idx) copies that data + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + idx = Index([1, 2, 3]) + + df["c"] = idx + + # the index data is copied + assert not np.shares_memory(get_array(df, "c"), idx.values) + + idx = RangeIndex(1, 4) + arr = idx.values + + df["d"] = idx + + assert not np.shares_memory(get_array(df, "d"), arr) + + +def test_set_columns_with_dataframe(using_copy_on_write): + # Case: setting a DataFrame as new columns copies that data + # (with delayed copy with CoW) + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + df2 = DataFrame({"c": [7, 8, 9], "d": [10, 11, 12]}) + + df[["c", "d"]] = df2 + + if using_copy_on_write: + assert np.shares_memory(get_array(df, "c"), get_array(df2, "c")) + else: + # the data is copied + assert not np.shares_memory(get_array(df, "c"), get_array(df2, "c")) + + # and modifying the set DataFrame does not modify the original DataFrame + df2.iloc[0, 0] = 0 + tm.assert_series_equal(df["c"], Series([7, 8, 9], name="c")) + + +def test_setitem_series_no_copy(using_copy_on_write): + # Case: setting a Series as column into a DataFrame can delay copying that data + df = DataFrame({"a": [1, 2, 3]}) + rhs = Series([4, 5, 6]) + rhs_orig = rhs.copy() + + # adding a new column + df["b"] = rhs + if using_copy_on_write: + assert np.shares_memory(get_array(rhs), get_array(df, "b")) + + df.iloc[0, 1] = 100 + tm.assert_series_equal(rhs, rhs_orig) + + +def test_setitem_series_no_copy_single_block(using_copy_on_write): + # Overwriting an existing column that is a single block + df = DataFrame({"a": [1, 2, 3], "b": [0.1, 0.2, 0.3]}) + rhs = Series([4, 5, 6]) + rhs_orig = rhs.copy() + + df["a"] = rhs + if using_copy_on_write: + assert np.shares_memory(get_array(rhs), get_array(df, "a")) + + df.iloc[0, 0] = 100 + tm.assert_series_equal(rhs, rhs_orig) + + +def test_setitem_series_no_copy_split_block(using_copy_on_write): + # Overwriting an existing column that is part of a larger block + df = DataFrame({"a": [1, 2, 3], "b": 1}) + rhs = Series([4, 5, 6]) + rhs_orig = rhs.copy() + + df["b"] = rhs + if using_copy_on_write: + assert np.shares_memory(get_array(rhs), get_array(df, "b")) + + df.iloc[0, 1] = 100 + tm.assert_series_equal(rhs, rhs_orig) + + +def test_setitem_series_column_midx_broadcasting(using_copy_on_write): + # Setting a Series to multiple columns will repeat the data + # (currently copying the data eagerly) + df = DataFrame( + [[1, 2, 3], [3, 4, 5]], + columns=MultiIndex.from_arrays([["a", "a", "b"], [1, 2, 3]]), + ) + rhs = Series([10, 11]) + df["a"] = rhs + assert not np.shares_memory(get_array(rhs), df._get_column_array(0)) + if using_copy_on_write: + assert df._mgr._has_no_reference(0) + + +def test_set_column_with_inplace_operator(using_copy_on_write, warn_copy_on_write): + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + + # this should not raise any warning + with tm.assert_produces_warning(None): + df["a"] += 1 + + # when it is not in a chain, then it should produce a warning + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + ser = df["a"] + with tm.assert_cow_warning(warn_copy_on_write): + ser += 1 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_util.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_util.py new file mode 100644 index 0000000000000000000000000000000000000000..ff55330d70b28c5459a4c0915dd93c8640a91add --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/test_util.py @@ -0,0 +1,14 @@ +import numpy as np + +from pandas import DataFrame +from pandas.tests.copy_view.util import get_array + + +def test_get_array_numpy(): + df = DataFrame({"a": [1, 2, 3]}) + assert np.shares_memory(get_array(df, "a"), get_array(df, "a")) + + +def test_get_array_masked(): + df = DataFrame({"a": [1, 2, 3]}, dtype="Int64") + assert np.shares_memory(get_array(df, "a"), get_array(df, "a")) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/util.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/util.py new file mode 100644 index 0000000000000000000000000000000000000000..969334424936559767b0bca87093acfec52f9763 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/copy_view/util.py @@ -0,0 +1,30 @@ +from pandas import ( + Categorical, + Index, + Series, +) +from pandas.core.arrays import BaseMaskedArray + + +def get_array(obj, col=None): + """ + Helper method to get array for a DataFrame column or a Series. + + Equivalent of df[col].values, but without going through normal getitem, + which triggers tracking references / CoW (and we might be testing that + this is done by some other operation). + """ + if isinstance(obj, Index): + arr = obj._values + elif isinstance(obj, Series) and (col is None or obj.name == col): + arr = obj._values + else: + assert col is not None + icol = obj.columns.get_loc(col) + assert isinstance(icol, int) + arr = obj._get_column_array(icol) + if isinstance(arr, BaseMaskedArray): + return arr._data + elif isinstance(arr, Categorical): + return arr + return getattr(arr, "_ndarray", arr) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_can_hold_element.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_can_hold_element.py new file mode 100644 index 0000000000000000000000000000000000000000..3b7d76ead119a1bad784ca3fda3303c7a9e23244 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_can_hold_element.py @@ -0,0 +1,79 @@ +import numpy as np + +from pandas.core.dtypes.cast import can_hold_element + + +def test_can_hold_element_range(any_int_numpy_dtype): + # GH#44261 + dtype = np.dtype(any_int_numpy_dtype) + arr = np.array([], dtype=dtype) + + rng = range(2, 127) + assert can_hold_element(arr, rng) + + # negatives -> can't be held by uint dtypes + rng = range(-2, 127) + if dtype.kind == "i": + assert can_hold_element(arr, rng) + else: + assert not can_hold_element(arr, rng) + + rng = range(2, 255) + if dtype == "int8": + assert not can_hold_element(arr, rng) + else: + assert can_hold_element(arr, rng) + + rng = range(-255, 65537) + if dtype.kind == "u": + assert not can_hold_element(arr, rng) + elif dtype.itemsize < 4: + assert not can_hold_element(arr, rng) + else: + assert can_hold_element(arr, rng) + + # empty + rng = range(-(10**10), -(10**10)) + assert len(rng) == 0 + # assert can_hold_element(arr, rng) + + rng = range(10**10, 10**10) + assert len(rng) == 0 + assert can_hold_element(arr, rng) + + +def test_can_hold_element_int_values_float_ndarray(): + arr = np.array([], dtype=np.int64) + + element = np.array([1.0, 2.0]) + assert can_hold_element(arr, element) + + assert not can_hold_element(arr, element + 0.5) + + # integer but not losslessly castable to int64 + element = np.array([3, 2**65], dtype=np.float64) + assert not can_hold_element(arr, element) + + +def test_can_hold_element_int8_int(): + arr = np.array([], dtype=np.int8) + + element = 2 + assert can_hold_element(arr, element) + assert can_hold_element(arr, np.int8(element)) + assert can_hold_element(arr, np.uint8(element)) + assert can_hold_element(arr, np.int16(element)) + assert can_hold_element(arr, np.uint16(element)) + assert can_hold_element(arr, np.int32(element)) + assert can_hold_element(arr, np.uint32(element)) + assert can_hold_element(arr, np.int64(element)) + assert can_hold_element(arr, np.uint64(element)) + + element = 2**9 + assert not can_hold_element(arr, element) + assert not can_hold_element(arr, np.int16(element)) + assert not can_hold_element(arr, np.uint16(element)) + assert not can_hold_element(arr, np.int32(element)) + assert not can_hold_element(arr, np.uint32(element)) + assert not can_hold_element(arr, np.int64(element)) + assert not can_hold_element(arr, np.uint64(element)) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_construct_from_scalar.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_construct_from_scalar.py new file mode 100644 index 0000000000000000000000000000000000000000..0ce04ce2e64cda1d3fc7c48390baa91ee2b06525 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_construct_from_scalar.py @@ -0,0 +1,55 @@ +import numpy as np +import pytest + +from pandas.core.dtypes.cast import construct_1d_arraylike_from_scalar +from pandas.core.dtypes.dtypes import CategoricalDtype + +from pandas import ( + Categorical, + Timedelta, +) +import pandas._testing as tm + + +def test_cast_1d_array_like_from_scalar_categorical(): + # see gh-19565 + # + # Categorical result from scalar did not maintain + # categories and ordering of the passed dtype. + cats = ["a", "b", "c"] + cat_type = CategoricalDtype(categories=cats, ordered=False) + expected = Categorical(["a", "a"], categories=cats) + + result = construct_1d_arraylike_from_scalar("a", len(expected), cat_type) + tm.assert_categorical_equal(result, expected) + + +def test_cast_1d_array_like_from_timestamp(fixed_now_ts): + # check we dont lose nanoseconds + ts = fixed_now_ts + Timedelta(1) + res = construct_1d_arraylike_from_scalar(ts, 2, np.dtype("M8[ns]")) + assert res[0] == ts + + +def test_cast_1d_array_like_from_timedelta(): + # check we dont lose nanoseconds + td = Timedelta(1) + res = construct_1d_arraylike_from_scalar(td, 2, np.dtype("m8[ns]")) + assert res[0] == td + + +def test_cast_1d_array_like_mismatched_datetimelike(): + td = np.timedelta64("NaT", "ns") + dt = np.datetime64("NaT", "ns") + + with pytest.raises(TypeError, match="Cannot cast"): + construct_1d_arraylike_from_scalar(td, 2, dt.dtype) + + with pytest.raises(TypeError, match="Cannot cast"): + construct_1d_arraylike_from_scalar(np.timedelta64(4, "ns"), 2, dt.dtype) + + with pytest.raises(TypeError, match="Cannot cast"): + construct_1d_arraylike_from_scalar(dt, 2, td.dtype) + + with pytest.raises(TypeError, match="Cannot cast"): + construct_1d_arraylike_from_scalar(np.datetime64(4, "ns"), 2, td.dtype) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_construct_ndarray.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_construct_ndarray.py new file mode 100644 index 0000000000000000000000000000000000000000..6b9b2dfda6e8b81a0f1f29d3ba97589b9d385600 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_construct_ndarray.py @@ -0,0 +1,36 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm +from pandas.core.construction import sanitize_array + + +@pytest.mark.parametrize( + "values, dtype, expected", + [ + ([1, 2, 3], None, np.array([1, 2, 3], dtype=np.int64)), + (np.array([1, 2, 3]), None, np.array([1, 2, 3])), + (["1", "2", None], None, np.array(["1", "2", None])), + (["1", "2", None], np.dtype("str"), np.array(["1", "2", None])), + ([1, 2, None], np.dtype("str"), np.array(["1", "2", None])), + ], +) +def test_construct_1d_ndarray_preserving_na( + values, dtype, expected, using_infer_string +): + result = sanitize_array(values, index=None, dtype=dtype) + if using_infer_string and expected.dtype == object and dtype is None: + tm.assert_extension_array_equal(result, pd.array(expected, dtype="str")) + else: + tm.assert_numpy_array_equal(result, expected) + + +@pytest.mark.parametrize("dtype", ["m8[ns]", "M8[ns]"]) +def test_construct_1d_ndarray_preserving_na_datetimelike(dtype): + arr = np.arange(5, dtype=np.int64).view(dtype) + expected = np.array(list(arr), dtype=object) + assert all(isinstance(x, type(arr[0])) for x in expected) + + result = sanitize_array(arr, index=None, dtype=np.dtype(object)) + tm.assert_numpy_array_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_construct_object_arr.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_construct_object_arr.py new file mode 100644 index 0000000000000000000000000000000000000000..cb44f91f34dec80c090d3ce3fc9a2dbd4578bb57 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_construct_object_arr.py @@ -0,0 +1,20 @@ +import pytest + +from pandas.core.dtypes.cast import construct_1d_object_array_from_listlike + + +@pytest.mark.parametrize("datum1", [1, 2.0, "3", (4, 5), [6, 7], None]) +@pytest.mark.parametrize("datum2", [8, 9.0, "10", (11, 12), [13, 14], None]) +def test_cast_1d_array(datum1, datum2): + data = [datum1, datum2] + result = construct_1d_object_array_from_listlike(data) + + # Direct comparison fails: https://github.com/numpy/numpy/issues/10218 + assert result.dtype == "object" + assert list(result) == data + + +@pytest.mark.parametrize("val", [1, 2.0, None]) +def test_cast_1d_array_invalid_scalar(val): + with pytest.raises(TypeError, match="has no len()"): + construct_1d_object_array_from_listlike(val) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_dict_compat.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_dict_compat.py new file mode 100644 index 0000000000000000000000000000000000000000..13dc82d779f953fbea54323785bdcadc3e24dfd8 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_dict_compat.py @@ -0,0 +1,14 @@ +import numpy as np + +from pandas.core.dtypes.cast import dict_compat + +from pandas import Timestamp + + +def test_dict_compat(): + data_datetime64 = {np.datetime64("1990-03-15"): 1, np.datetime64("2015-03-15"): 2} + data_unchanged = {1: 2, 3: 4, 5: 6} + expected = {Timestamp("1990-3-15"): 1, Timestamp("2015-03-15"): 2} + assert dict_compat(data_datetime64) == expected + assert dict_compat(expected) == expected + assert dict_compat(data_unchanged) == data_unchanged diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_downcast.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_downcast.py new file mode 100644 index 0000000000000000000000000000000000000000..9430ba2c478ae40a4a21bcc6dc034783cdf9543c --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_downcast.py @@ -0,0 +1,97 @@ +import decimal + +import numpy as np +import pytest + +from pandas.core.dtypes.cast import maybe_downcast_to_dtype + +from pandas import ( + Series, + Timedelta, +) +import pandas._testing as tm + + +@pytest.mark.parametrize( + "arr,dtype,expected", + [ + ( + np.array([8.5, 8.6, 8.7, 8.8, 8.9999999999995]), + "infer", + np.array([8.5, 8.6, 8.7, 8.8, 8.9999999999995]), + ), + ( + np.array([8.0, 8.0, 8.0, 8.0, 8.9999999999995]), + "infer", + np.array([8, 8, 8, 8, 9], dtype=np.int64), + ), + ( + np.array([8.0, 8.0, 8.0, 8.0, 9.0000000000005]), + "infer", + np.array([8, 8, 8, 8, 9], dtype=np.int64), + ), + ( + # This is a judgement call, but we do _not_ downcast Decimal + # objects + np.array([decimal.Decimal(0.0)]), + "int64", + np.array([decimal.Decimal(0.0)]), + ), + ( + # GH#45837 + np.array([Timedelta(days=1), Timedelta(days=2)], dtype=object), + "infer", + np.array([1, 2], dtype="m8[D]").astype("m8[ns]"), + ), + # TODO: similar for dt64, dt64tz, Period, Interval? + ], +) +def test_downcast(arr, expected, dtype): + result = maybe_downcast_to_dtype(arr, dtype) + tm.assert_numpy_array_equal(result, expected) + + +def test_downcast_booleans(): + # see gh-16875: coercing of booleans. + ser = Series([True, True, False]) + result = maybe_downcast_to_dtype(ser, np.dtype(np.float64)) + + expected = ser.values + tm.assert_numpy_array_equal(result, expected) + + +def test_downcast_conversion_no_nan(any_real_numpy_dtype): + dtype = any_real_numpy_dtype + expected = np.array([1, 2]) + arr = np.array([1.0, 2.0], dtype=dtype) + + result = maybe_downcast_to_dtype(arr, "infer") + tm.assert_almost_equal(result, expected, check_dtype=False) + + +def test_downcast_conversion_nan(float_numpy_dtype): + dtype = float_numpy_dtype + data = [1.0, 2.0, np.nan] + + expected = np.array(data, dtype=dtype) + arr = np.array(data, dtype=dtype) + + result = maybe_downcast_to_dtype(arr, "infer") + tm.assert_almost_equal(result, expected) + + +def test_downcast_conversion_empty(any_real_numpy_dtype): + dtype = any_real_numpy_dtype + arr = np.array([], dtype=dtype) + result = maybe_downcast_to_dtype(arr, np.dtype("int64")) + tm.assert_numpy_array_equal(result, np.array([], dtype=np.int64)) + + +@pytest.mark.parametrize("klass", [np.datetime64, np.timedelta64]) +def test_datetime_likes_nan(klass): + dtype = klass.__name__ + "[ns]" + arr = np.array([1, 2, np.nan]) + + exp = np.array([1, 2, klass("NaT")], dtype) + res = maybe_downcast_to_dtype(arr, dtype) + tm.assert_numpy_array_equal(res, exp) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_find_common_type.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_find_common_type.py new file mode 100644 index 0000000000000000000000000000000000000000..83ef7382fbe8a27ad96511a3675c51b9eadc2331 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_find_common_type.py @@ -0,0 +1,175 @@ +import numpy as np +import pytest + +from pandas.core.dtypes.cast import find_common_type +from pandas.core.dtypes.common import pandas_dtype +from pandas.core.dtypes.dtypes import ( + CategoricalDtype, + DatetimeTZDtype, + IntervalDtype, + PeriodDtype, +) + +from pandas import ( + Categorical, + Index, +) + + +@pytest.mark.parametrize( + "source_dtypes,expected_common_dtype", + [ + ((np.int64,), np.int64), + ((np.uint64,), np.uint64), + ((np.float32,), np.float32), + ((object,), object), + # Into ints. + ((np.int16, np.int64), np.int64), + ((np.int32, np.uint32), np.int64), + ((np.uint16, np.uint64), np.uint64), + # Into floats. + ((np.float16, np.float32), np.float32), + ((np.float16, np.int16), np.float32), + ((np.float32, np.int16), np.float32), + ((np.uint64, np.int64), np.float64), + ((np.int16, np.float64), np.float64), + ((np.float16, np.int64), np.float64), + # Into others. + ((np.complex128, np.int32), np.complex128), + ((object, np.float32), object), + ((object, np.int16), object), + # Bool with int. + ((np.dtype("bool"), np.int64), object), + ((np.dtype("bool"), np.int32), object), + ((np.dtype("bool"), np.int16), object), + ((np.dtype("bool"), np.int8), object), + ((np.dtype("bool"), np.uint64), object), + ((np.dtype("bool"), np.uint32), object), + ((np.dtype("bool"), np.uint16), object), + ((np.dtype("bool"), np.uint8), object), + # Bool with float. + ((np.dtype("bool"), np.float64), object), + ((np.dtype("bool"), np.float32), object), + ( + (np.dtype("datetime64[ns]"), np.dtype("datetime64[ns]")), + np.dtype("datetime64[ns]"), + ), + ( + (np.dtype("timedelta64[ns]"), np.dtype("timedelta64[ns]")), + np.dtype("timedelta64[ns]"), + ), + ( + (np.dtype("datetime64[ns]"), np.dtype("datetime64[ms]")), + np.dtype("datetime64[ns]"), + ), + ( + (np.dtype("timedelta64[ms]"), np.dtype("timedelta64[ns]")), + np.dtype("timedelta64[ns]"), + ), + ((np.dtype("datetime64[ns]"), np.dtype("timedelta64[ns]")), object), + ((np.dtype("datetime64[ns]"), np.int64), object), + ], +) +def test_numpy_dtypes(source_dtypes, expected_common_dtype): + source_dtypes = [pandas_dtype(x) for x in source_dtypes] + assert find_common_type(source_dtypes) == expected_common_dtype + + +def test_raises_empty_input(): + with pytest.raises(ValueError, match="no types given"): + find_common_type([]) + + +@pytest.mark.parametrize( + "dtypes,exp_type", + [ + ([CategoricalDtype()], "category"), + ([object, CategoricalDtype()], object), + ([CategoricalDtype(), CategoricalDtype()], "category"), + ], +) +def test_categorical_dtype(dtypes, exp_type): + assert find_common_type(dtypes) == exp_type + + +def test_datetimetz_dtype_match(): + dtype = DatetimeTZDtype(unit="ns", tz="US/Eastern") + assert find_common_type([dtype, dtype]) == "datetime64[ns, US/Eastern]" + + +@pytest.mark.parametrize( + "dtype2", + [ + DatetimeTZDtype(unit="ns", tz="Asia/Tokyo"), + np.dtype("datetime64[ns]"), + object, + np.int64, + ], +) +def test_datetimetz_dtype_mismatch(dtype2): + dtype = DatetimeTZDtype(unit="ns", tz="US/Eastern") + assert find_common_type([dtype, dtype2]) == object + assert find_common_type([dtype2, dtype]) == object + + +def test_period_dtype_match(): + dtype = PeriodDtype(freq="D") + assert find_common_type([dtype, dtype]) == "period[D]" + + +@pytest.mark.parametrize( + "dtype2", + [ + DatetimeTZDtype(unit="ns", tz="Asia/Tokyo"), + PeriodDtype(freq="2D"), + PeriodDtype(freq="h"), + np.dtype("datetime64[ns]"), + object, + np.int64, + ], +) +def test_period_dtype_mismatch(dtype2): + dtype = PeriodDtype(freq="D") + assert find_common_type([dtype, dtype2]) == object + assert find_common_type([dtype2, dtype]) == object + + +interval_dtypes = [ + IntervalDtype(np.int64, "right"), + IntervalDtype(np.float64, "right"), + IntervalDtype(np.uint64, "right"), + IntervalDtype(DatetimeTZDtype(unit="ns", tz="US/Eastern"), "right"), + IntervalDtype("M8[ns]", "right"), + IntervalDtype("m8[ns]", "right"), +] + + +@pytest.mark.parametrize("left", interval_dtypes) +@pytest.mark.parametrize("right", interval_dtypes) +def test_interval_dtype(left, right): + result = find_common_type([left, right]) + + if left is right: + assert result is left + + elif left.subtype.kind in ["i", "u", "f"]: + # i.e. numeric + if right.subtype.kind in ["i", "u", "f"]: + # both numeric -> common numeric subtype + expected = IntervalDtype(np.float64, "right") + assert result == expected + else: + assert result == object + + else: + assert result == object + + +@pytest.mark.parametrize("dtype", interval_dtypes) +def test_interval_dtype_with_categorical(dtype): + obj = Index([], dtype=dtype) + + cat = Categorical([], categories=obj) + + result = find_common_type([dtype, cat.dtype]) + assert result == dtype diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_infer_datetimelike.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_infer_datetimelike.py new file mode 100644 index 0000000000000000000000000000000000000000..3c3844e69586d2f49377e77910627ee42fef9bb2 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_infer_datetimelike.py @@ -0,0 +1,28 @@ +import numpy as np +import pytest + +from pandas import ( + DataFrame, + NaT, + Series, + Timestamp, +) + + +@pytest.mark.parametrize( + "data,exp_size", + [ + # see gh-16362. + ([[NaT, "a", "b", 0], [NaT, "b", "c", 1]], 8), + ([[NaT, "a", 0], [NaT, "b", 1]], 6), + ], +) +def test_maybe_infer_to_datetimelike_df_construct(data, exp_size): + result = DataFrame(np.array(data)) + assert result.size == exp_size + + +def test_maybe_infer_to_datetimelike_ser_construct(): + # see gh-19671. + result = Series(["M1701", Timestamp("20130101")]) + assert result.dtype.kind == "O" diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_infer_dtype.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_infer_dtype.py new file mode 100644 index 0000000000000000000000000000000000000000..679031a625c2da1386af78059b5e2986975a73ab --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_infer_dtype.py @@ -0,0 +1,216 @@ +from datetime import ( + date, + datetime, + timedelta, +) + +import numpy as np +import pytest + +from pandas.core.dtypes.cast import ( + infer_dtype_from, + infer_dtype_from_array, + infer_dtype_from_scalar, +) +from pandas.core.dtypes.common import is_dtype_equal + +from pandas import ( + Categorical, + Interval, + Period, + Series, + Timedelta, + Timestamp, + date_range, +) + + +def test_infer_dtype_from_int_scalar(any_int_numpy_dtype): + # Test that infer_dtype_from_scalar is + # returning correct dtype for int and float. + data = np.dtype(any_int_numpy_dtype).type(12) + dtype, val = infer_dtype_from_scalar(data) + assert dtype == type(data) + + +def test_infer_dtype_from_float_scalar(float_numpy_dtype): + float_numpy_dtype = np.dtype(float_numpy_dtype).type + data = float_numpy_dtype(12) + + dtype, val = infer_dtype_from_scalar(data) + assert dtype == float_numpy_dtype + + +@pytest.mark.parametrize( + "data,exp_dtype", [(12, np.int64), (np.float64(12), np.float64)] +) +def test_infer_dtype_from_python_scalar(data, exp_dtype): + dtype, val = infer_dtype_from_scalar(data) + assert dtype == exp_dtype + + +@pytest.mark.parametrize("bool_val", [True, False]) +def test_infer_dtype_from_boolean(bool_val): + dtype, val = infer_dtype_from_scalar(bool_val) + assert dtype == np.bool_ + + +def test_infer_dtype_from_complex(complex_dtype): + data = np.dtype(complex_dtype).type(1) + dtype, val = infer_dtype_from_scalar(data) + assert dtype == np.complex128 + + +def test_infer_dtype_from_datetime(): + dt64 = np.datetime64(1, "ns") + dtype, val = infer_dtype_from_scalar(dt64) + assert dtype == "M8[ns]" + + ts = Timestamp(1) + dtype, val = infer_dtype_from_scalar(ts) + assert dtype == "M8[ns]" + + dt = datetime(2000, 1, 1, 0, 0) + dtype, val = infer_dtype_from_scalar(dt) + assert dtype == "M8[us]" + + +def test_infer_dtype_from_timedelta(): + td64 = np.timedelta64(1, "ns") + dtype, val = infer_dtype_from_scalar(td64) + assert dtype == "m8[ns]" + + pytd = timedelta(1) + dtype, val = infer_dtype_from_scalar(pytd) + assert dtype == "m8[us]" + + td = Timedelta(1) + dtype, val = infer_dtype_from_scalar(td) + assert dtype == "m8[ns]" + + +@pytest.mark.parametrize("freq", ["M", "D"]) +def test_infer_dtype_from_period(freq): + p = Period("2011-01-01", freq=freq) + dtype, val = infer_dtype_from_scalar(p) + + exp_dtype = f"period[{freq}]" + + assert dtype == exp_dtype + assert val == p + + +def test_infer_dtype_misc(): + dt = date(2000, 1, 1) + dtype, val = infer_dtype_from_scalar(dt) + assert dtype == np.object_ + + ts = Timestamp(1, tz="US/Eastern") + dtype, val = infer_dtype_from_scalar(ts) + assert dtype == "datetime64[ns, US/Eastern]" + + +@pytest.mark.parametrize("tz", ["UTC", "US/Eastern", "Asia/Tokyo"]) +def test_infer_from_scalar_tz(tz): + dt = Timestamp(1, tz=tz) + dtype, val = infer_dtype_from_scalar(dt) + + exp_dtype = f"datetime64[ns, {tz}]" + + assert dtype == exp_dtype + assert val == dt + + +@pytest.mark.parametrize( + "left, right, subtype", + [ + (0, 1, "int64"), + (0.0, 1.0, "float64"), + (Timestamp(0), Timestamp(1), "datetime64[ns]"), + (Timestamp(0, tz="UTC"), Timestamp(1, tz="UTC"), "datetime64[ns, UTC]"), + (Timedelta(0), Timedelta(1), "timedelta64[ns]"), + ], +) +def test_infer_from_interval(left, right, subtype, closed): + # GH 30337 + interval = Interval(left, right, closed) + result_dtype, result_value = infer_dtype_from_scalar(interval) + expected_dtype = f"interval[{subtype}, {closed}]" + assert result_dtype == expected_dtype + assert result_value == interval + + +def test_infer_dtype_from_scalar_errors(): + msg = "invalid ndarray passed to infer_dtype_from_scalar" + + with pytest.raises(ValueError, match=msg): + infer_dtype_from_scalar(np.array([1])) + + +@pytest.mark.parametrize( + "value, expected", + [ + ("foo", np.object_), + (b"foo", np.object_), + (1, np.int64), + (1.5, np.float64), + (np.datetime64("2016-01-01"), np.dtype("M8[s]")), + (Timestamp("20160101"), np.dtype("M8[s]")), + (Timestamp("20160101", tz="UTC"), "datetime64[s, UTC]"), + ], +) +def test_infer_dtype_from_scalar(value, expected, using_infer_string): + dtype, _ = infer_dtype_from_scalar(value) + if using_infer_string and value == "foo": + expected = "string" + assert is_dtype_equal(dtype, expected) + + with pytest.raises(TypeError, match="must be list-like"): + infer_dtype_from_array(value) + + +@pytest.mark.parametrize( + "arr, expected", + [ + ([1], np.dtype(int)), + (np.array([1], dtype=np.int64), np.int64), + ([np.nan, 1, ""], np.object_), + (np.array([[1.0, 2.0]]), np.float64), + (Categorical(list("aabc")), "category"), + (Categorical([1, 2, 3]), "category"), + (date_range("20160101", periods=3), np.dtype("=M8[ns]")), + ( + date_range("20160101", periods=3, tz="US/Eastern"), + "datetime64[ns, US/Eastern]", + ), + (Series([1.0, 2, 3]), np.float64), + (Series(list("abc")), np.object_), + ( + Series(date_range("20160101", periods=3, tz="US/Eastern")), + "datetime64[ns, US/Eastern]", + ), + ], +) +def test_infer_dtype_from_array(arr, expected, using_infer_string): + dtype, _ = infer_dtype_from_array(arr) + if ( + using_infer_string + and isinstance(arr, Series) + and arr.tolist() == ["a", "b", "c"] + ): + expected = "string" + assert is_dtype_equal(dtype, expected) + + +@pytest.mark.parametrize("cls", [np.datetime64, np.timedelta64]) +def test_infer_dtype_from_scalar_zerodim_datetimelike(cls): + # ndarray.item() can incorrectly return int instead of td64/dt64 + val = cls(1234, "ns") + arr = np.array(val) + + dtype, res = infer_dtype_from_scalar(arr) + assert dtype.type is cls + assert isinstance(res, cls) + + dtype, res = infer_dtype_from(arr) + assert dtype.type is cls diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_maybe_box_native.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_maybe_box_native.py new file mode 100644 index 0000000000000000000000000000000000000000..3f62f31dac2191a15d7df8db028a9286262d0080 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_maybe_box_native.py @@ -0,0 +1,40 @@ +from datetime import datetime + +import numpy as np +import pytest + +from pandas.core.dtypes.cast import maybe_box_native + +from pandas import ( + Interval, + Period, + Timedelta, + Timestamp, +) + + +@pytest.mark.parametrize( + "obj,expected_dtype", + [ + (b"\x00\x10", bytes), + (int(4), int), + (np.uint(4), int), + (np.int32(-4), int), + (np.uint8(4), int), + (float(454.98), float), + (np.float16(0.4), float), + (np.float64(1.4), float), + (np.bool_(False), bool), + (datetime(2005, 2, 25), datetime), + (np.datetime64("2005-02-25"), Timestamp), + (Timestamp("2005-02-25"), Timestamp), + (np.timedelta64(1, "D"), Timedelta), + (Timedelta(1, "D"), Timedelta), + (Interval(0, 1), Interval), + (Period("4Q2005"), Period), + ], +) +def test_maybe_box_native(obj, expected_dtype): + boxed_obj = maybe_box_native(obj) + result_dtype = type(boxed_obj) + assert result_dtype is expected_dtype diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_promote.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_promote.py new file mode 100644 index 0000000000000000000000000000000000000000..021107724bef73d998191d65b55fb29848fc8b9a --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/cast/test_promote.py @@ -0,0 +1,530 @@ +""" +These test the method maybe_promote from core/dtypes/cast.py +""" + +import datetime +from decimal import Decimal + +import numpy as np +import pytest + +from pandas._libs.tslibs import NaT + +from pandas.core.dtypes.cast import maybe_promote +from pandas.core.dtypes.common import is_scalar +from pandas.core.dtypes.dtypes import DatetimeTZDtype +from pandas.core.dtypes.missing import isna + +import pandas as pd + + +def _check_promote(dtype, fill_value, expected_dtype, exp_val_for_scalar=None): + """ + Auxiliary function to unify testing of scalar/array promotion. + + Parameters + ---------- + dtype : dtype + The value to pass on as the first argument to maybe_promote. + fill_value : scalar + The value to pass on as the second argument to maybe_promote as + a scalar. + expected_dtype : dtype + The expected dtype returned by maybe_promote (by design this is the + same regardless of whether fill_value was passed as a scalar or in an + array!). + exp_val_for_scalar : scalar + The expected value for the (potentially upcast) fill_value returned by + maybe_promote. + """ + assert is_scalar(fill_value) + + # here, we pass on fill_value as a scalar directly; the expected value + # returned from maybe_promote is fill_value, potentially upcast to the + # returned dtype. + result_dtype, result_fill_value = maybe_promote(dtype, fill_value) + expected_fill_value = exp_val_for_scalar + + assert result_dtype == expected_dtype + _assert_match(result_fill_value, expected_fill_value) + + +def _assert_match(result_fill_value, expected_fill_value): + # GH#23982/25425 require the same type in addition to equality/NA-ness + res_type = type(result_fill_value) + ex_type = type(expected_fill_value) + + if hasattr(result_fill_value, "dtype"): + # Compare types in a way that is robust to platform-specific + # idiosyncrasies where e.g. sometimes we get "ulonglong" as an alias + # for "uint64" or "intc" as an alias for "int32" + assert result_fill_value.dtype.kind == expected_fill_value.dtype.kind + assert result_fill_value.dtype.itemsize == expected_fill_value.dtype.itemsize + else: + # On some builds, type comparison fails, e.g. np.int32 != np.int32 + assert res_type == ex_type or res_type.__name__ == ex_type.__name__ + + match_value = result_fill_value == expected_fill_value + if match_value is pd.NA: + match_value = False + + # Note: type check above ensures that we have the _same_ NA value + # for missing values, None == None (which is checked + # through match_value above), but np.nan != np.nan and pd.NaT != pd.NaT + match_missing = isna(result_fill_value) and isna(expected_fill_value) + + assert match_value or match_missing + + +@pytest.mark.parametrize( + "dtype, fill_value, expected_dtype", + [ + # size 8 + ("int8", 1, "int8"), + ("int8", np.iinfo("int8").max + 1, "int16"), + ("int8", np.iinfo("int16").max + 1, "int32"), + ("int8", np.iinfo("int32").max + 1, "int64"), + ("int8", np.iinfo("int64").max + 1, "object"), + ("int8", -1, "int8"), + ("int8", np.iinfo("int8").min - 1, "int16"), + ("int8", np.iinfo("int16").min - 1, "int32"), + ("int8", np.iinfo("int32").min - 1, "int64"), + ("int8", np.iinfo("int64").min - 1, "object"), + # keep signed-ness as long as possible + ("uint8", 1, "uint8"), + ("uint8", np.iinfo("int8").max + 1, "uint8"), + ("uint8", np.iinfo("uint8").max + 1, "uint16"), + ("uint8", np.iinfo("int16").max + 1, "uint16"), + ("uint8", np.iinfo("uint16").max + 1, "uint32"), + ("uint8", np.iinfo("int32").max + 1, "uint32"), + ("uint8", np.iinfo("uint32").max + 1, "uint64"), + ("uint8", np.iinfo("int64").max + 1, "uint64"), + ("uint8", np.iinfo("uint64").max + 1, "object"), + # max of uint8 cannot be contained in int8 + ("uint8", -1, "int16"), + ("uint8", np.iinfo("int8").min - 1, "int16"), + ("uint8", np.iinfo("int16").min - 1, "int32"), + ("uint8", np.iinfo("int32").min - 1, "int64"), + ("uint8", np.iinfo("int64").min - 1, "object"), + # size 16 + ("int16", 1, "int16"), + ("int16", np.iinfo("int8").max + 1, "int16"), + ("int16", np.iinfo("int16").max + 1, "int32"), + ("int16", np.iinfo("int32").max + 1, "int64"), + ("int16", np.iinfo("int64").max + 1, "object"), + ("int16", -1, "int16"), + ("int16", np.iinfo("int8").min - 1, "int16"), + ("int16", np.iinfo("int16").min - 1, "int32"), + ("int16", np.iinfo("int32").min - 1, "int64"), + ("int16", np.iinfo("int64").min - 1, "object"), + ("uint16", 1, "uint16"), + ("uint16", np.iinfo("int8").max + 1, "uint16"), + ("uint16", np.iinfo("uint8").max + 1, "uint16"), + ("uint16", np.iinfo("int16").max + 1, "uint16"), + ("uint16", np.iinfo("uint16").max + 1, "uint32"), + ("uint16", np.iinfo("int32").max + 1, "uint32"), + ("uint16", np.iinfo("uint32").max + 1, "uint64"), + ("uint16", np.iinfo("int64").max + 1, "uint64"), + ("uint16", np.iinfo("uint64").max + 1, "object"), + ("uint16", -1, "int32"), + ("uint16", np.iinfo("int8").min - 1, "int32"), + ("uint16", np.iinfo("int16").min - 1, "int32"), + ("uint16", np.iinfo("int32").min - 1, "int64"), + ("uint16", np.iinfo("int64").min - 1, "object"), + # size 32 + ("int32", 1, "int32"), + ("int32", np.iinfo("int8").max + 1, "int32"), + ("int32", np.iinfo("int16").max + 1, "int32"), + ("int32", np.iinfo("int32").max + 1, "int64"), + ("int32", np.iinfo("int64").max + 1, "object"), + ("int32", -1, "int32"), + ("int32", np.iinfo("int8").min - 1, "int32"), + ("int32", np.iinfo("int16").min - 1, "int32"), + ("int32", np.iinfo("int32").min - 1, "int64"), + ("int32", np.iinfo("int64").min - 1, "object"), + ("uint32", 1, "uint32"), + ("uint32", np.iinfo("int8").max + 1, "uint32"), + ("uint32", np.iinfo("uint8").max + 1, "uint32"), + ("uint32", np.iinfo("int16").max + 1, "uint32"), + ("uint32", np.iinfo("uint16").max + 1, "uint32"), + ("uint32", np.iinfo("int32").max + 1, "uint32"), + ("uint32", np.iinfo("uint32").max + 1, "uint64"), + ("uint32", np.iinfo("int64").max + 1, "uint64"), + ("uint32", np.iinfo("uint64").max + 1, "object"), + ("uint32", -1, "int64"), + ("uint32", np.iinfo("int8").min - 1, "int64"), + ("uint32", np.iinfo("int16").min - 1, "int64"), + ("uint32", np.iinfo("int32").min - 1, "int64"), + ("uint32", np.iinfo("int64").min - 1, "object"), + # size 64 + ("int64", 1, "int64"), + ("int64", np.iinfo("int8").max + 1, "int64"), + ("int64", np.iinfo("int16").max + 1, "int64"), + ("int64", np.iinfo("int32").max + 1, "int64"), + ("int64", np.iinfo("int64").max + 1, "object"), + ("int64", -1, "int64"), + ("int64", np.iinfo("int8").min - 1, "int64"), + ("int64", np.iinfo("int16").min - 1, "int64"), + ("int64", np.iinfo("int32").min - 1, "int64"), + ("int64", np.iinfo("int64").min - 1, "object"), + ("uint64", 1, "uint64"), + ("uint64", np.iinfo("int8").max + 1, "uint64"), + ("uint64", np.iinfo("uint8").max + 1, "uint64"), + ("uint64", np.iinfo("int16").max + 1, "uint64"), + ("uint64", np.iinfo("uint16").max + 1, "uint64"), + ("uint64", np.iinfo("int32").max + 1, "uint64"), + ("uint64", np.iinfo("uint32").max + 1, "uint64"), + ("uint64", np.iinfo("int64").max + 1, "uint64"), + ("uint64", np.iinfo("uint64").max + 1, "object"), + ("uint64", -1, "object"), + ("uint64", np.iinfo("int8").min - 1, "object"), + ("uint64", np.iinfo("int16").min - 1, "object"), + ("uint64", np.iinfo("int32").min - 1, "object"), + ("uint64", np.iinfo("int64").min - 1, "object"), + ], +) +def test_maybe_promote_int_with_int(dtype, fill_value, expected_dtype): + dtype = np.dtype(dtype) + expected_dtype = np.dtype(expected_dtype) + + # output is not a generic int, but corresponds to expected_dtype + exp_val_for_scalar = np.array([fill_value], dtype=expected_dtype)[0] + + _check_promote(dtype, fill_value, expected_dtype, exp_val_for_scalar) + + +def test_maybe_promote_int_with_float(any_int_numpy_dtype, float_numpy_dtype): + dtype = np.dtype(any_int_numpy_dtype) + fill_dtype = np.dtype(float_numpy_dtype) + + # create array of given dtype; casts "1" to correct dtype + fill_value = np.array([1], dtype=fill_dtype)[0] + + # filling int with float always upcasts to float64 + expected_dtype = np.float64 + # fill_value can be different float type + exp_val_for_scalar = np.float64(fill_value) + + _check_promote(dtype, fill_value, expected_dtype, exp_val_for_scalar) + + +def test_maybe_promote_float_with_int(float_numpy_dtype, any_int_numpy_dtype): + dtype = np.dtype(float_numpy_dtype) + fill_dtype = np.dtype(any_int_numpy_dtype) + + # create array of given dtype; casts "1" to correct dtype + fill_value = np.array([1], dtype=fill_dtype)[0] + + # filling float with int always keeps float dtype + # because: np.finfo('float32').max > np.iinfo('uint64').max + expected_dtype = dtype + # output is not a generic float, but corresponds to expected_dtype + exp_val_for_scalar = np.array([fill_value], dtype=expected_dtype)[0] + + _check_promote(dtype, fill_value, expected_dtype, exp_val_for_scalar) + + +@pytest.mark.parametrize( + "dtype, fill_value, expected_dtype", + [ + # float filled with float + ("float32", 1, "float32"), + ("float32", float(np.finfo("float32").max) * 1.1, "float64"), + ("float64", 1, "float64"), + ("float64", float(np.finfo("float32").max) * 1.1, "float64"), + # complex filled with float + ("complex64", 1, "complex64"), + ("complex64", float(np.finfo("float32").max) * 1.1, "complex128"), + ("complex128", 1, "complex128"), + ("complex128", float(np.finfo("float32").max) * 1.1, "complex128"), + # float filled with complex + ("float32", 1 + 1j, "complex64"), + ("float32", float(np.finfo("float32").max) * (1.1 + 1j), "complex128"), + ("float64", 1 + 1j, "complex128"), + ("float64", float(np.finfo("float32").max) * (1.1 + 1j), "complex128"), + # complex filled with complex + ("complex64", 1 + 1j, "complex64"), + ("complex64", float(np.finfo("float32").max) * (1.1 + 1j), "complex128"), + ("complex128", 1 + 1j, "complex128"), + ("complex128", float(np.finfo("float32").max) * (1.1 + 1j), "complex128"), + ], +) +def test_maybe_promote_float_with_float(dtype, fill_value, expected_dtype): + dtype = np.dtype(dtype) + expected_dtype = np.dtype(expected_dtype) + + # output is not a generic float, but corresponds to expected_dtype + exp_val_for_scalar = np.array([fill_value], dtype=expected_dtype)[0] + + _check_promote(dtype, fill_value, expected_dtype, exp_val_for_scalar) + + +def test_maybe_promote_bool_with_any(any_numpy_dtype): + dtype = np.dtype(bool) + fill_dtype = np.dtype(any_numpy_dtype) + + # create array of given dtype; casts "1" to correct dtype + fill_value = np.array([1], dtype=fill_dtype)[0] + + # filling bool with anything but bool casts to object + expected_dtype = np.dtype(object) if fill_dtype != bool else fill_dtype + exp_val_for_scalar = fill_value + + _check_promote(dtype, fill_value, expected_dtype, exp_val_for_scalar) + + +def test_maybe_promote_any_with_bool(any_numpy_dtype): + dtype = np.dtype(any_numpy_dtype) + fill_value = True + + # filling anything but bool with bool casts to object + expected_dtype = np.dtype(object) if dtype != bool else dtype + # output is not a generic bool, but corresponds to expected_dtype + exp_val_for_scalar = np.array([fill_value], dtype=expected_dtype)[0] + + _check_promote(dtype, fill_value, expected_dtype, exp_val_for_scalar) + + +def test_maybe_promote_bytes_with_any(bytes_dtype, any_numpy_dtype): + dtype = np.dtype(bytes_dtype) + fill_dtype = np.dtype(any_numpy_dtype) + + # create array of given dtype; casts "1" to correct dtype + fill_value = np.array([1], dtype=fill_dtype)[0] + + # we never use bytes dtype internally, always promote to object + expected_dtype = np.dtype(np.object_) + exp_val_for_scalar = fill_value + + _check_promote(dtype, fill_value, expected_dtype, exp_val_for_scalar) + + +def test_maybe_promote_any_with_bytes(any_numpy_dtype): + dtype = np.dtype(any_numpy_dtype) + + # create array of given dtype + fill_value = b"abc" + + # we never use bytes dtype internally, always promote to object + expected_dtype = np.dtype(np.object_) + # output is not a generic bytes, but corresponds to expected_dtype + exp_val_for_scalar = np.array([fill_value], dtype=expected_dtype)[0] + + _check_promote(dtype, fill_value, expected_dtype, exp_val_for_scalar) + + +def test_maybe_promote_datetime64_with_any(datetime64_dtype, any_numpy_dtype): + dtype = np.dtype(datetime64_dtype) + fill_dtype = np.dtype(any_numpy_dtype) + + # create array of given dtype; casts "1" to correct dtype + fill_value = np.array([1], dtype=fill_dtype)[0] + + # filling datetime with anything but datetime casts to object + if fill_dtype.kind == "M": + expected_dtype = dtype + # for datetime dtypes, scalar values get cast to to_datetime64 + exp_val_for_scalar = pd.Timestamp(fill_value).to_datetime64() + else: + expected_dtype = np.dtype(object) + exp_val_for_scalar = fill_value + + _check_promote(dtype, fill_value, expected_dtype, exp_val_for_scalar) + + +@pytest.mark.parametrize( + "fill_value", + [ + pd.Timestamp("now"), + np.datetime64("now"), + datetime.datetime.now(), + datetime.date.today(), + ], + ids=["pd.Timestamp", "np.datetime64", "datetime.datetime", "datetime.date"], +) +def test_maybe_promote_any_with_datetime64(any_numpy_dtype, fill_value): + dtype = np.dtype(any_numpy_dtype) + + # filling datetime with anything but datetime casts to object + if dtype.kind == "M": + expected_dtype = dtype + # for datetime dtypes, scalar values get cast to pd.Timestamp.value + exp_val_for_scalar = pd.Timestamp(fill_value).to_datetime64() + else: + expected_dtype = np.dtype(object) + exp_val_for_scalar = fill_value + + if type(fill_value) is datetime.date and dtype.kind == "M": + # Casting date to dt64 is deprecated, in 2.0 enforced to cast to object + expected_dtype = np.dtype(object) + exp_val_for_scalar = fill_value + + _check_promote(dtype, fill_value, expected_dtype, exp_val_for_scalar) + + +@pytest.mark.parametrize( + "fill_value", + [ + pd.Timestamp(2023, 1, 1), + np.datetime64("2023-01-01"), + datetime.datetime(2023, 1, 1), + datetime.date(2023, 1, 1), + ], + ids=["pd.Timestamp", "np.datetime64", "datetime.datetime", "datetime.date"], +) +def test_maybe_promote_any_numpy_dtype_with_datetimetz( + any_numpy_dtype, tz_aware_fixture, fill_value +): + dtype = np.dtype(any_numpy_dtype) + fill_dtype = DatetimeTZDtype(tz=tz_aware_fixture) + + fill_value = pd.Series([fill_value], dtype=fill_dtype)[0] + + # filling any numpy dtype with datetimetz casts to object + expected_dtype = np.dtype(object) + exp_val_for_scalar = fill_value + + _check_promote(dtype, fill_value, expected_dtype, exp_val_for_scalar) + + +def test_maybe_promote_timedelta64_with_any(timedelta64_dtype, any_numpy_dtype): + dtype = np.dtype(timedelta64_dtype) + fill_dtype = np.dtype(any_numpy_dtype) + + # create array of given dtype; casts "1" to correct dtype + fill_value = np.array([1], dtype=fill_dtype)[0] + + # filling timedelta with anything but timedelta casts to object + if fill_dtype.kind == "m": + expected_dtype = dtype + # for timedelta dtypes, scalar values get cast to pd.Timedelta.value + exp_val_for_scalar = pd.Timedelta(fill_value).to_timedelta64() + else: + expected_dtype = np.dtype(object) + exp_val_for_scalar = fill_value + + _check_promote(dtype, fill_value, expected_dtype, exp_val_for_scalar) + + +@pytest.mark.parametrize( + "fill_value", + [pd.Timedelta(days=1), np.timedelta64(24, "h"), datetime.timedelta(1)], + ids=["pd.Timedelta", "np.timedelta64", "datetime.timedelta"], +) +def test_maybe_promote_any_with_timedelta64(any_numpy_dtype, fill_value): + dtype = np.dtype(any_numpy_dtype) + + # filling anything but timedelta with timedelta casts to object + if dtype.kind == "m": + expected_dtype = dtype + # for timedelta dtypes, scalar values get cast to pd.Timedelta.value + exp_val_for_scalar = pd.Timedelta(fill_value).to_timedelta64() + else: + expected_dtype = np.dtype(object) + exp_val_for_scalar = fill_value + + _check_promote(dtype, fill_value, expected_dtype, exp_val_for_scalar) + + +def test_maybe_promote_string_with_any(string_dtype, any_numpy_dtype): + dtype = np.dtype(string_dtype) + fill_dtype = np.dtype(any_numpy_dtype) + + # create array of given dtype; casts "1" to correct dtype + fill_value = np.array([1], dtype=fill_dtype)[0] + + # filling string with anything casts to object + expected_dtype = np.dtype(object) + exp_val_for_scalar = fill_value + + _check_promote(dtype, fill_value, expected_dtype, exp_val_for_scalar) + + +def test_maybe_promote_any_with_string(any_numpy_dtype): + dtype = np.dtype(any_numpy_dtype) + + # create array of given dtype + fill_value = "abc" + + # filling anything with a string casts to object + expected_dtype = np.dtype(object) + exp_val_for_scalar = fill_value + + _check_promote(dtype, fill_value, expected_dtype, exp_val_for_scalar) + + +def test_maybe_promote_object_with_any(object_dtype, any_numpy_dtype): + dtype = np.dtype(object_dtype) + fill_dtype = np.dtype(any_numpy_dtype) + + # create array of given dtype; casts "1" to correct dtype + fill_value = np.array([1], dtype=fill_dtype)[0] + + # filling object with anything stays object + expected_dtype = np.dtype(object) + exp_val_for_scalar = fill_value + + _check_promote(dtype, fill_value, expected_dtype, exp_val_for_scalar) + + +def test_maybe_promote_any_with_object(any_numpy_dtype): + dtype = np.dtype(any_numpy_dtype) + + # create array of object dtype from a scalar value (i.e. passing + # dtypes.common.is_scalar), which can however not be cast to int/float etc. + fill_value = pd.DateOffset(1) + + # filling object with anything stays object + expected_dtype = np.dtype(object) + exp_val_for_scalar = fill_value + + _check_promote(dtype, fill_value, expected_dtype, exp_val_for_scalar) + + +def test_maybe_promote_any_numpy_dtype_with_na(any_numpy_dtype, nulls_fixture): + fill_value = nulls_fixture + dtype = np.dtype(any_numpy_dtype) + + if isinstance(fill_value, Decimal): + # Subject to change, but ATM (When Decimal(NAN) is being added to nulls_fixture) + # this is the existing behavior in maybe_promote, + # hinges on is_valid_na_for_dtype + if dtype.kind in "iufc": + if dtype.kind in "iu": + expected_dtype = np.dtype(np.float64) + else: + expected_dtype = dtype + exp_val_for_scalar = np.nan + else: + expected_dtype = np.dtype(object) + exp_val_for_scalar = fill_value + elif dtype.kind in "iu" and fill_value is not NaT: + # integer + other missing value (np.nan / None) casts to float + expected_dtype = np.float64 + exp_val_for_scalar = np.nan + elif dtype == object and fill_value is NaT: + # inserting into object does not cast the value + # but *does* cast None to np.nan + expected_dtype = np.dtype(object) + exp_val_for_scalar = fill_value + elif dtype.kind in "mM": + # datetime / timedelta cast all missing values to dtyped-NaT + expected_dtype = dtype + exp_val_for_scalar = dtype.type("NaT", "ns") + elif fill_value is NaT: + # NaT upcasts everything that's not datetime/timedelta to object + expected_dtype = np.dtype(object) + exp_val_for_scalar = NaT + elif dtype.kind in "fc": + # float / complex + missing value (!= NaT) stays the same + expected_dtype = dtype + exp_val_for_scalar = np.nan + else: + # all other cases cast to object, and use np.nan as missing value + expected_dtype = np.dtype(object) + if fill_value is pd.NA: + exp_val_for_scalar = pd.NA + else: + exp_val_for_scalar = np.nan + + _check_promote(dtype, fill_value, expected_dtype, exp_val_for_scalar) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/test_common.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/test_common.py new file mode 100644 index 0000000000000000000000000000000000000000..579f5636922dc3fb4ed652e1fa374607ec57501a --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/test_common.py @@ -0,0 +1,865 @@ +from __future__ import annotations + +import numpy as np +import pytest + +from pandas.compat import HAS_PYARROW +import pandas.util._test_decorators as td + +from pandas.core.dtypes.astype import astype_array +import pandas.core.dtypes.common as com +from pandas.core.dtypes.dtypes import ( + CategoricalDtype, + CategoricalDtypeType, + DatetimeTZDtype, + ExtensionDtype, + IntervalDtype, + PeriodDtype, +) +from pandas.core.dtypes.missing import isna + +import pandas as pd +import pandas._testing as tm +from pandas.api.types import pandas_dtype +from pandas.arrays import SparseArray +from pandas.util.version import Version + + +# EA & Actual Dtypes +def to_ea_dtypes(dtypes): + """convert list of string dtypes to EA dtype""" + return [getattr(pd, dt + "Dtype") for dt in dtypes] + + +def to_numpy_dtypes(dtypes): + """convert list of string dtypes to numpy dtype""" + return [getattr(np, dt) for dt in dtypes if isinstance(dt, str)] + + +class TestNumpyEADtype: + # Passing invalid dtype, both as a string or object, must raise TypeError + # Per issue GH15520 + @pytest.mark.parametrize("box", [pd.Timestamp, "pd.Timestamp", list]) + def test_invalid_dtype_error(self, box): + with pytest.raises(TypeError, match="not understood"): + com.pandas_dtype(box) + + @pytest.mark.parametrize( + "dtype", + [ + object, + "float64", + np.object_, + np.dtype("object"), + "O", + np.float64, + float, + np.dtype("float64"), + "object_", + ], + ) + def test_pandas_dtype_valid(self, dtype): + assert com.pandas_dtype(dtype) == dtype + + @pytest.mark.parametrize( + "dtype", ["M8[ns]", "m8[ns]", "object", "float64", "int64"] + ) + def test_numpy_dtype(self, dtype): + assert com.pandas_dtype(dtype) == np.dtype(dtype) + + def test_numpy_string_dtype(self): + # do not parse freq-like string as period dtype + assert com.pandas_dtype("U") == np.dtype("U") + assert com.pandas_dtype("S") == np.dtype("S") + + @pytest.mark.parametrize( + "dtype", + [ + "datetime64[ns, US/Eastern]", + "datetime64[ns, Asia/Tokyo]", + "datetime64[ns, UTC]", + # GH#33885 check that the M8 alias is understood + "M8[ns, US/Eastern]", + "M8[ns, Asia/Tokyo]", + "M8[ns, UTC]", + ], + ) + def test_datetimetz_dtype(self, dtype): + assert com.pandas_dtype(dtype) == DatetimeTZDtype.construct_from_string(dtype) + assert com.pandas_dtype(dtype) == dtype + + def test_categorical_dtype(self): + assert com.pandas_dtype("category") == CategoricalDtype() + + @pytest.mark.parametrize( + "dtype", + [ + "period[D]", + "period[3M]", + "period[us]", + "Period[D]", + "Period[3M]", + "Period[us]", + ], + ) + def test_period_dtype(self, dtype): + assert com.pandas_dtype(dtype) is not PeriodDtype(dtype) + assert com.pandas_dtype(dtype) == PeriodDtype(dtype) + assert com.pandas_dtype(dtype) == dtype + + +dtypes = { + "datetime_tz": com.pandas_dtype("datetime64[ns, US/Eastern]"), + "datetime": com.pandas_dtype("datetime64[ns]"), + "timedelta": com.pandas_dtype("timedelta64[ns]"), + "period": PeriodDtype("D"), + "integer": np.dtype(np.int64), + "float": np.dtype(np.float64), + "object": np.dtype(object), + "category": com.pandas_dtype("category"), + "string": pd.StringDtype(), +} + + +@pytest.mark.parametrize("name1,dtype1", list(dtypes.items()), ids=lambda x: str(x)) +@pytest.mark.parametrize("name2,dtype2", list(dtypes.items()), ids=lambda x: str(x)) +def test_dtype_equal(name1, dtype1, name2, dtype2): + # match equal to self, but not equal to other + assert com.is_dtype_equal(dtype1, dtype1) + if name1 != name2: + assert not com.is_dtype_equal(dtype1, dtype2) + + +@pytest.mark.parametrize("name,dtype", list(dtypes.items()), ids=lambda x: str(x)) +def test_pyarrow_string_import_error(name, dtype): + # GH-44276 + assert not com.is_dtype_equal(dtype, "string[pyarrow]") + + +@pytest.mark.parametrize( + "dtype1,dtype2", + [ + (np.int8, np.int64), + (np.int16, np.int64), + (np.int32, np.int64), + (np.float32, np.float64), + (PeriodDtype("D"), PeriodDtype("2D")), # PeriodType + ( + com.pandas_dtype("datetime64[ns, US/Eastern]"), + com.pandas_dtype("datetime64[ns, CET]"), + ), # Datetime + (None, None), # gh-15941: no exception should be raised. + ], +) +def test_dtype_equal_strict(dtype1, dtype2): + assert not com.is_dtype_equal(dtype1, dtype2) + + +def get_is_dtype_funcs(): + """ + Get all functions in pandas.core.dtypes.common that + begin with 'is_' and end with 'dtype' + + """ + fnames = [f for f in dir(com) if (f.startswith("is_") and f.endswith("dtype"))] + fnames.remove("is_string_or_object_np_dtype") # fastpath requires np.dtype obj + return [getattr(com, fname) for fname in fnames] + + +@pytest.mark.filterwarnings( + "ignore:is_categorical_dtype is deprecated:DeprecationWarning" +) +@pytest.mark.parametrize("func", get_is_dtype_funcs(), ids=lambda x: x.__name__) +def test_get_dtype_error_catch(func): + # see gh-15941 + # + # No exception should be raised. + + msg = f"{func.__name__} is deprecated" + warn = None + if ( + func is com.is_int64_dtype + or func is com.is_interval_dtype + or func is com.is_datetime64tz_dtype + or func is com.is_categorical_dtype + or func is com.is_period_dtype + ): + warn = DeprecationWarning + + with tm.assert_produces_warning(warn, match=msg): + assert not func(None) + + +def test_is_object(): + assert com.is_object_dtype(object) + assert com.is_object_dtype(np.array([], dtype=object)) + + assert not com.is_object_dtype(int) + assert not com.is_object_dtype(np.array([], dtype=int)) + assert not com.is_object_dtype([1, 2, 3]) + + +@pytest.mark.parametrize( + "check_scipy", [False, pytest.param(True, marks=td.skip_if_no("scipy"))] +) +def test_is_sparse(check_scipy): + msg = "is_sparse is deprecated" + with tm.assert_produces_warning(DeprecationWarning, match=msg): + assert com.is_sparse(SparseArray([1, 2, 3])) + + assert not com.is_sparse(np.array([1, 2, 3])) + + if check_scipy: + import scipy.sparse + + assert not com.is_sparse(scipy.sparse.bsr_matrix([1, 2, 3])) + + +def test_is_scipy_sparse(): + sp_sparse = pytest.importorskip("scipy.sparse") + + assert com.is_scipy_sparse(sp_sparse.bsr_matrix([1, 2, 3])) + + assert not com.is_scipy_sparse(SparseArray([1, 2, 3])) + + +def test_is_datetime64_dtype(): + assert not com.is_datetime64_dtype(object) + assert not com.is_datetime64_dtype([1, 2, 3]) + assert not com.is_datetime64_dtype(np.array([], dtype=int)) + + assert com.is_datetime64_dtype(np.datetime64) + assert com.is_datetime64_dtype(np.array([], dtype=np.datetime64)) + + +def test_is_datetime64tz_dtype(): + msg = "is_datetime64tz_dtype is deprecated" + with tm.assert_produces_warning(DeprecationWarning, match=msg): + assert not com.is_datetime64tz_dtype(object) + assert not com.is_datetime64tz_dtype([1, 2, 3]) + assert not com.is_datetime64tz_dtype(pd.DatetimeIndex([1, 2, 3])) + assert com.is_datetime64tz_dtype(pd.DatetimeIndex(["2000"], tz="US/Eastern")) + + +def test_custom_ea_kind_M_not_datetime64tz(): + # GH 34986 + class NotTZDtype(ExtensionDtype): + @property + def kind(self) -> str: + return "M" + + not_tz_dtype = NotTZDtype() + msg = "is_datetime64tz_dtype is deprecated" + with tm.assert_produces_warning(DeprecationWarning, match=msg): + assert not com.is_datetime64tz_dtype(not_tz_dtype) + assert not com.needs_i8_conversion(not_tz_dtype) + + +def test_is_timedelta64_dtype(): + assert not com.is_timedelta64_dtype(object) + assert not com.is_timedelta64_dtype(None) + assert not com.is_timedelta64_dtype([1, 2, 3]) + assert not com.is_timedelta64_dtype(np.array([], dtype=np.datetime64)) + assert not com.is_timedelta64_dtype("0 days") + assert not com.is_timedelta64_dtype("0 days 00:00:00") + assert not com.is_timedelta64_dtype(["0 days 00:00:00"]) + assert not com.is_timedelta64_dtype("NO DATE") + + assert com.is_timedelta64_dtype(np.timedelta64) + assert com.is_timedelta64_dtype(pd.Series([], dtype="timedelta64[ns]")) + assert com.is_timedelta64_dtype(pd.to_timedelta(["0 days", "1 days"])) + + +def test_is_period_dtype(): + msg = "is_period_dtype is deprecated" + with tm.assert_produces_warning(DeprecationWarning, match=msg): + assert not com.is_period_dtype(object) + assert not com.is_period_dtype([1, 2, 3]) + assert not com.is_period_dtype(pd.Period("2017-01-01")) + + assert com.is_period_dtype(PeriodDtype(freq="D")) + assert com.is_period_dtype(pd.PeriodIndex([], freq="Y")) + + +def test_is_interval_dtype(): + msg = "is_interval_dtype is deprecated" + with tm.assert_produces_warning(DeprecationWarning, match=msg): + assert not com.is_interval_dtype(object) + assert not com.is_interval_dtype([1, 2, 3]) + + assert com.is_interval_dtype(IntervalDtype()) + + interval = pd.Interval(1, 2, closed="right") + assert not com.is_interval_dtype(interval) + assert com.is_interval_dtype(pd.IntervalIndex([interval])) + + +def test_is_categorical_dtype(): + msg = "is_categorical_dtype is deprecated" + with tm.assert_produces_warning(DeprecationWarning, match=msg): + assert not com.is_categorical_dtype(object) + assert not com.is_categorical_dtype([1, 2, 3]) + + assert com.is_categorical_dtype(CategoricalDtype()) + assert com.is_categorical_dtype(pd.Categorical([1, 2, 3])) + assert com.is_categorical_dtype(pd.CategoricalIndex([1, 2, 3])) + + +@pytest.mark.parametrize( + "dtype, expected", + [ + (int, False), + (pd.Series([1, 2]), False), + (str, True), + (object, True), + (np.array(["a", "b"]), True), + (pd.StringDtype(), True), + (pd.Index([], dtype="O"), True), + ], +) +def test_is_string_dtype(dtype, expected): + # GH#54661 + + result = com.is_string_dtype(dtype) + assert result is expected + + +@pytest.mark.parametrize( + "data", + [[(0, 1), (1, 1)], pd.Categorical([1, 2, 3]), np.array([1, 2], dtype=object)], +) +def test_is_string_dtype_arraylike_with_object_elements_not_strings(data): + # GH 15585 + assert not com.is_string_dtype(pd.Series(data)) + + +def test_is_string_dtype_nullable(nullable_string_dtype): + assert com.is_string_dtype(pd.array(["a", "b"], dtype=nullable_string_dtype)) + + +integer_dtypes: list = [] + + +@pytest.mark.parametrize( + "dtype", + integer_dtypes + + [pd.Series([1, 2])] + + tm.ALL_INT_NUMPY_DTYPES + + to_numpy_dtypes(tm.ALL_INT_NUMPY_DTYPES) + + tm.ALL_INT_EA_DTYPES + + to_ea_dtypes(tm.ALL_INT_EA_DTYPES), +) +def test_is_integer_dtype(dtype): + assert com.is_integer_dtype(dtype) + + +@pytest.mark.parametrize( + "dtype", + [ + str, + float, + np.datetime64, + np.timedelta64, + pd.Index([1, 2.0]), + np.array(["a", "b"]), + np.array([], dtype=np.timedelta64), + ], +) +def test_is_not_integer_dtype(dtype): + assert not com.is_integer_dtype(dtype) + + +signed_integer_dtypes: list = [] + + +@pytest.mark.parametrize( + "dtype", + signed_integer_dtypes + + [pd.Series([1, 2])] + + tm.SIGNED_INT_NUMPY_DTYPES + + to_numpy_dtypes(tm.SIGNED_INT_NUMPY_DTYPES) + + tm.SIGNED_INT_EA_DTYPES + + to_ea_dtypes(tm.SIGNED_INT_EA_DTYPES), +) +def test_is_signed_integer_dtype(dtype): + assert com.is_integer_dtype(dtype) + + +@pytest.mark.parametrize( + "dtype", + [ + str, + float, + np.datetime64, + np.timedelta64, + pd.Index([1, 2.0]), + np.array(["a", "b"]), + np.array([], dtype=np.timedelta64), + ] + + tm.UNSIGNED_INT_NUMPY_DTYPES + + to_numpy_dtypes(tm.UNSIGNED_INT_NUMPY_DTYPES) + + tm.UNSIGNED_INT_EA_DTYPES + + to_ea_dtypes(tm.UNSIGNED_INT_EA_DTYPES), +) +def test_is_not_signed_integer_dtype(dtype): + assert not com.is_signed_integer_dtype(dtype) + + +unsigned_integer_dtypes: list = [] + + +@pytest.mark.parametrize( + "dtype", + unsigned_integer_dtypes + + [pd.Series([1, 2], dtype=np.uint32)] + + tm.UNSIGNED_INT_NUMPY_DTYPES + + to_numpy_dtypes(tm.UNSIGNED_INT_NUMPY_DTYPES) + + tm.UNSIGNED_INT_EA_DTYPES + + to_ea_dtypes(tm.UNSIGNED_INT_EA_DTYPES), +) +def test_is_unsigned_integer_dtype(dtype): + assert com.is_unsigned_integer_dtype(dtype) + + +@pytest.mark.parametrize( + "dtype", + [ + str, + float, + np.datetime64, + np.timedelta64, + pd.Index([1, 2.0]), + np.array(["a", "b"]), + np.array([], dtype=np.timedelta64), + ] + + tm.SIGNED_INT_NUMPY_DTYPES + + to_numpy_dtypes(tm.SIGNED_INT_NUMPY_DTYPES) + + tm.SIGNED_INT_EA_DTYPES + + to_ea_dtypes(tm.SIGNED_INT_EA_DTYPES), +) +def test_is_not_unsigned_integer_dtype(dtype): + assert not com.is_unsigned_integer_dtype(dtype) + + +@pytest.mark.parametrize( + "dtype", [np.int64, np.array([1, 2], dtype=np.int64), "Int64", pd.Int64Dtype] +) +def test_is_int64_dtype(dtype): + msg = "is_int64_dtype is deprecated" + with tm.assert_produces_warning(DeprecationWarning, match=msg): + assert com.is_int64_dtype(dtype) + + +def test_type_comparison_with_numeric_ea_dtype(any_numeric_ea_dtype): + # GH#43038 + assert pandas_dtype(any_numeric_ea_dtype) == any_numeric_ea_dtype + + +def test_type_comparison_with_real_numpy_dtype(any_real_numpy_dtype): + # GH#43038 + assert pandas_dtype(any_real_numpy_dtype) == any_real_numpy_dtype + + +def test_type_comparison_with_signed_int_ea_dtype_and_signed_int_numpy_dtype( + any_signed_int_ea_dtype, any_signed_int_numpy_dtype +): + # GH#43038 + assert not pandas_dtype(any_signed_int_ea_dtype) == any_signed_int_numpy_dtype + + +@pytest.mark.parametrize( + "dtype", + [ + str, + float, + np.int32, + np.uint64, + pd.Index([1, 2.0]), + np.array(["a", "b"]), + np.array([1, 2], dtype=np.uint32), + "int8", + "Int8", + pd.Int8Dtype, + ], +) +def test_is_not_int64_dtype(dtype): + msg = "is_int64_dtype is deprecated" + with tm.assert_produces_warning(DeprecationWarning, match=msg): + assert not com.is_int64_dtype(dtype) + + +def test_is_datetime64_any_dtype(): + assert not com.is_datetime64_any_dtype(int) + assert not com.is_datetime64_any_dtype(str) + assert not com.is_datetime64_any_dtype(np.array([1, 2])) + assert not com.is_datetime64_any_dtype(np.array(["a", "b"])) + + assert com.is_datetime64_any_dtype(np.datetime64) + assert com.is_datetime64_any_dtype(np.array([], dtype=np.datetime64)) + assert com.is_datetime64_any_dtype(DatetimeTZDtype("ns", "US/Eastern")) + assert com.is_datetime64_any_dtype( + pd.DatetimeIndex([1, 2, 3], dtype="datetime64[ns]") + ) + + +def test_is_datetime64_ns_dtype(): + assert not com.is_datetime64_ns_dtype(int) + assert not com.is_datetime64_ns_dtype(str) + assert not com.is_datetime64_ns_dtype(np.datetime64) + assert not com.is_datetime64_ns_dtype(np.array([1, 2])) + assert not com.is_datetime64_ns_dtype(np.array(["a", "b"])) + assert not com.is_datetime64_ns_dtype(np.array([], dtype=np.datetime64)) + + # This datetime array has the wrong unit (ps instead of ns) + assert not com.is_datetime64_ns_dtype(np.array([], dtype="datetime64[ps]")) + + assert com.is_datetime64_ns_dtype(DatetimeTZDtype("ns", "US/Eastern")) + assert com.is_datetime64_ns_dtype( + pd.DatetimeIndex([1, 2, 3], dtype=np.dtype("datetime64[ns]")) + ) + + # non-nano dt64tz + assert not com.is_datetime64_ns_dtype(DatetimeTZDtype("us", "US/Eastern")) + + +def test_is_timedelta64_ns_dtype(): + assert not com.is_timedelta64_ns_dtype(np.dtype("m8[ps]")) + assert not com.is_timedelta64_ns_dtype(np.array([1, 2], dtype=np.timedelta64)) + + assert com.is_timedelta64_ns_dtype(np.dtype("m8[ns]")) + assert com.is_timedelta64_ns_dtype(np.array([1, 2], dtype="m8[ns]")) + + +def test_is_numeric_v_string_like(): + assert not com.is_numeric_v_string_like(np.array([1]), 1) + assert not com.is_numeric_v_string_like(np.array([1]), np.array([2])) + assert not com.is_numeric_v_string_like(np.array(["foo"]), np.array(["foo"])) + + assert com.is_numeric_v_string_like(np.array([1]), "foo") + assert com.is_numeric_v_string_like(np.array([1, 2]), np.array(["foo"])) + assert com.is_numeric_v_string_like(np.array(["foo"]), np.array([1, 2])) + + +def test_needs_i8_conversion(): + assert not com.needs_i8_conversion(str) + assert not com.needs_i8_conversion(np.int64) + assert not com.needs_i8_conversion(pd.Series([1, 2])) + assert not com.needs_i8_conversion(np.array(["a", "b"])) + + assert not com.needs_i8_conversion(np.datetime64) + assert com.needs_i8_conversion(np.dtype(np.datetime64)) + assert not com.needs_i8_conversion(pd.Series([], dtype="timedelta64[ns]")) + assert com.needs_i8_conversion(pd.Series([], dtype="timedelta64[ns]").dtype) + assert not com.needs_i8_conversion(pd.DatetimeIndex(["2000"], tz="US/Eastern")) + assert com.needs_i8_conversion(pd.DatetimeIndex(["2000"], tz="US/Eastern").dtype) + + +def test_is_numeric_dtype(): + assert not com.is_numeric_dtype(str) + assert not com.is_numeric_dtype(np.datetime64) + assert not com.is_numeric_dtype(np.timedelta64) + assert not com.is_numeric_dtype(np.array(["a", "b"])) + assert not com.is_numeric_dtype(np.array([], dtype=np.timedelta64)) + + assert com.is_numeric_dtype(int) + assert com.is_numeric_dtype(float) + assert com.is_numeric_dtype(np.uint64) + assert com.is_numeric_dtype(pd.Series([1, 2])) + assert com.is_numeric_dtype(pd.Index([1, 2.0])) + + class MyNumericDType(ExtensionDtype): + @property + def type(self): + return str + + @property + def name(self): + raise NotImplementedError + + @classmethod + def construct_array_type(cls): + raise NotImplementedError + + def _is_numeric(self) -> bool: + return True + + assert com.is_numeric_dtype(MyNumericDType()) + + +def test_is_any_real_numeric_dtype(): + assert not com.is_any_real_numeric_dtype(str) + assert not com.is_any_real_numeric_dtype(bool) + assert not com.is_any_real_numeric_dtype(complex) + assert not com.is_any_real_numeric_dtype(object) + assert not com.is_any_real_numeric_dtype(np.datetime64) + assert not com.is_any_real_numeric_dtype(np.array(["a", "b", complex(1, 2)])) + assert not com.is_any_real_numeric_dtype(pd.DataFrame([complex(1, 2), True])) + + assert com.is_any_real_numeric_dtype(int) + assert com.is_any_real_numeric_dtype(float) + assert com.is_any_real_numeric_dtype(np.array([1, 2.5])) + + +def test_is_float_dtype(): + assert not com.is_float_dtype(str) + assert not com.is_float_dtype(int) + assert not com.is_float_dtype(pd.Series([1, 2])) + assert not com.is_float_dtype(np.array(["a", "b"])) + + assert com.is_float_dtype(float) + assert com.is_float_dtype(pd.Index([1, 2.0])) + + +def test_is_bool_dtype(): + assert not com.is_bool_dtype(int) + assert not com.is_bool_dtype(str) + assert not com.is_bool_dtype(pd.Series([1, 2])) + assert not com.is_bool_dtype(pd.Series(["a", "b"], dtype="category")) + assert not com.is_bool_dtype(np.array(["a", "b"])) + assert not com.is_bool_dtype(pd.Index(["a", "b"])) + assert not com.is_bool_dtype("Int64") + + assert com.is_bool_dtype(bool) + assert com.is_bool_dtype(np.bool_) + assert com.is_bool_dtype(pd.Series([True, False], dtype="category")) + assert com.is_bool_dtype(np.array([True, False])) + assert com.is_bool_dtype(pd.Index([True, False])) + + assert com.is_bool_dtype(pd.BooleanDtype()) + assert com.is_bool_dtype(pd.array([True, False, None], dtype="boolean")) + assert com.is_bool_dtype("boolean") + + +def test_is_bool_dtype_numpy_error(): + # GH39010 + assert not com.is_bool_dtype("0 - Name") + + +@pytest.mark.parametrize( + "check_scipy", [False, pytest.param(True, marks=td.skip_if_no("scipy"))] +) +def test_is_extension_array_dtype(check_scipy): + assert not com.is_extension_array_dtype([1, 2, 3]) + assert not com.is_extension_array_dtype(np.array([1, 2, 3])) + assert not com.is_extension_array_dtype(pd.DatetimeIndex([1, 2, 3])) + + cat = pd.Categorical([1, 2, 3]) + assert com.is_extension_array_dtype(cat) + assert com.is_extension_array_dtype(pd.Series(cat)) + assert com.is_extension_array_dtype(SparseArray([1, 2, 3])) + assert com.is_extension_array_dtype(pd.DatetimeIndex(["2000"], tz="US/Eastern")) + + dtype = DatetimeTZDtype("ns", tz="US/Eastern") + s = pd.Series([], dtype=dtype) + assert com.is_extension_array_dtype(s) + + if check_scipy: + import scipy.sparse + + assert not com.is_extension_array_dtype(scipy.sparse.bsr_matrix([1, 2, 3])) + + +def test_is_complex_dtype(): + assert not com.is_complex_dtype(int) + assert not com.is_complex_dtype(str) + assert not com.is_complex_dtype(pd.Series([1, 2])) + assert not com.is_complex_dtype(np.array(["a", "b"])) + + assert com.is_complex_dtype(np.complex128) + assert com.is_complex_dtype(complex) + assert com.is_complex_dtype(np.array([1 + 1j, 5])) + + +@pytest.mark.parametrize( + "input_param,result", + [ + (int, np.dtype(int)), + ("int32", np.dtype("int32")), + (float, np.dtype(float)), + ("float64", np.dtype("float64")), + (np.dtype("float64"), np.dtype("float64")), + (str, np.dtype(str)), + (pd.Series([1, 2], dtype=np.dtype("int16")), np.dtype("int16")), + (pd.Series(["a", "b"], dtype=object), np.dtype(object)), + (pd.Index([1, 2]), np.dtype("int64")), + (pd.Index(["a", "b"], dtype=object), np.dtype(object)), + ("category", "category"), + (pd.Categorical(["a", "b"]).dtype, CategoricalDtype(["a", "b"])), + (pd.Categorical(["a", "b"]), CategoricalDtype(["a", "b"])), + (pd.CategoricalIndex(["a", "b"]).dtype, CategoricalDtype(["a", "b"])), + (pd.CategoricalIndex(["a", "b"]), CategoricalDtype(["a", "b"])), + (CategoricalDtype(), CategoricalDtype()), + (pd.DatetimeIndex([1, 2]), np.dtype("=M8[ns]")), + (pd.DatetimeIndex([1, 2]).dtype, np.dtype("=M8[ns]")), + (" df.two.sum() + + with tm.assert_produces_warning(None): + # successfully modify column in place + # this should not raise a warning + df.one += 1 + assert df.one.iloc[0] == 2 + + with tm.assert_produces_warning(None): + # successfully add an attribute to a series + # this should not raise a warning + df.two.not_an_index = [1, 2] + + with tm.assert_produces_warning(UserWarning): + # warn when setting column to nonexistent name + df.four = df.two + 2 + assert df.four.sum() > df.two.sum() diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/test_inference.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/test_inference.py new file mode 100644 index 0000000000000000000000000000000000000000..79b7e6ff092b6efc519d8b29ad134c8019c6602f --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/test_inference.py @@ -0,0 +1,2072 @@ +""" +These the test the public routines exposed in types/common.py +related to inference and not otherwise tested in types/test_common.py + +""" +import collections +from collections import namedtuple +from collections.abc import Iterator +from datetime import ( + date, + datetime, + time, + timedelta, +) +from decimal import Decimal +from fractions import Fraction +from io import StringIO +import itertools +from numbers import Number +import re +import sys +from typing import ( + Generic, + TypeVar, +) + +import numpy as np +import pytest +import pytz + +from pandas._libs import ( + lib, + missing as libmissing, + ops as libops, +) +from pandas.compat.numpy import np_version_gt2 + +from pandas.core.dtypes import inference +from pandas.core.dtypes.cast import find_result_type +from pandas.core.dtypes.common import ( + ensure_int32, + is_bool, + is_complex, + is_datetime64_any_dtype, + is_datetime64_dtype, + is_datetime64_ns_dtype, + is_datetime64tz_dtype, + is_float, + is_integer, + is_number, + is_scalar, + is_scipy_sparse, + is_timedelta64_dtype, + is_timedelta64_ns_dtype, +) + +import pandas as pd +from pandas import ( + Categorical, + DataFrame, + DateOffset, + DatetimeIndex, + Index, + Interval, + Period, + PeriodIndex, + Series, + Timedelta, + TimedeltaIndex, + Timestamp, +) +import pandas._testing as tm +from pandas.core.arrays import ( + BooleanArray, + FloatingArray, + IntegerArray, +) + + +@pytest.fixture(params=[True, False], ids=str) +def coerce(request): + return request.param + + +class MockNumpyLikeArray: + """ + A class which is numpy-like (e.g. Pint's Quantity) but not actually numpy + + The key is that it is not actually a numpy array so + ``util.is_array(mock_numpy_like_array_instance)`` returns ``False``. Other + important properties are that the class defines a :meth:`__iter__` method + (so that ``isinstance(abc.Iterable)`` returns ``True``) and has a + :meth:`ndim` property, as pandas special-cases 0-dimensional arrays in some + cases. + + We expect pandas to behave with respect to such duck arrays exactly as + with real numpy arrays. In particular, a 0-dimensional duck array is *NOT* + a scalar (`is_scalar(np.array(1)) == False`), but it is not list-like either. + """ + + def __init__(self, values) -> None: + self._values = values + + def __iter__(self) -> Iterator: + iter_values = iter(self._values) + + def it_outer(): + yield from iter_values + + return it_outer() + + def __len__(self) -> int: + return len(self._values) + + def __array__(self, dtype=None, copy=None): + return np.asarray(self._values, dtype=dtype) + + @property + def ndim(self): + return self._values.ndim + + @property + def dtype(self): + return self._values.dtype + + @property + def size(self): + return self._values.size + + @property + def shape(self): + return self._values.shape + + +# collect all objects to be tested for list-like-ness; use tuples of objects, +# whether they are list-like or not (special casing for sets), and their ID +ll_params = [ + ([1], True, "list"), + ([], True, "list-empty"), + ((1,), True, "tuple"), + ((), True, "tuple-empty"), + ({"a": 1}, True, "dict"), + ({}, True, "dict-empty"), + ({"a", 1}, "set", "set"), + (set(), "set", "set-empty"), + (frozenset({"a", 1}), "set", "frozenset"), + (frozenset(), "set", "frozenset-empty"), + (iter([1, 2]), True, "iterator"), + (iter([]), True, "iterator-empty"), + ((x for x in [1, 2]), True, "generator"), + ((_ for _ in []), True, "generator-empty"), + (Series([1]), True, "Series"), + (Series([], dtype=object), True, "Series-empty"), + # Series.str will still raise a TypeError if iterated + (Series(["a"]).str, True, "StringMethods"), + (Series([], dtype="O").str, True, "StringMethods-empty"), + (Index([1]), True, "Index"), + (Index([]), True, "Index-empty"), + (DataFrame([[1]]), True, "DataFrame"), + (DataFrame(), True, "DataFrame-empty"), + (np.ndarray((2,) * 1), True, "ndarray-1d"), + (np.array([]), True, "ndarray-1d-empty"), + (np.ndarray((2,) * 2), True, "ndarray-2d"), + (np.array([[]]), True, "ndarray-2d-empty"), + (np.ndarray((2,) * 3), True, "ndarray-3d"), + (np.array([[[]]]), True, "ndarray-3d-empty"), + (np.ndarray((2,) * 4), True, "ndarray-4d"), + (np.array([[[[]]]]), True, "ndarray-4d-empty"), + (np.array(2), False, "ndarray-0d"), + (MockNumpyLikeArray(np.ndarray((2,) * 1)), True, "duck-ndarray-1d"), + (MockNumpyLikeArray(np.array([])), True, "duck-ndarray-1d-empty"), + (MockNumpyLikeArray(np.ndarray((2,) * 2)), True, "duck-ndarray-2d"), + (MockNumpyLikeArray(np.array([[]])), True, "duck-ndarray-2d-empty"), + (MockNumpyLikeArray(np.ndarray((2,) * 3)), True, "duck-ndarray-3d"), + (MockNumpyLikeArray(np.array([[[]]])), True, "duck-ndarray-3d-empty"), + (MockNumpyLikeArray(np.ndarray((2,) * 4)), True, "duck-ndarray-4d"), + (MockNumpyLikeArray(np.array([[[[]]]])), True, "duck-ndarray-4d-empty"), + (MockNumpyLikeArray(np.array(2)), False, "duck-ndarray-0d"), + (1, False, "int"), + (b"123", False, "bytes"), + (b"", False, "bytes-empty"), + ("123", False, "string"), + ("", False, "string-empty"), + (str, False, "string-type"), + (object(), False, "object"), + (np.nan, False, "NaN"), + (None, False, "None"), +] +objs, expected, ids = zip(*ll_params) + + +@pytest.fixture(params=zip(objs, expected), ids=ids) +def maybe_list_like(request): + return request.param + + +def test_is_list_like(maybe_list_like): + obj, expected = maybe_list_like + expected = True if expected == "set" else expected + assert inference.is_list_like(obj) == expected + + +def test_is_list_like_disallow_sets(maybe_list_like): + obj, expected = maybe_list_like + expected = False if expected == "set" else expected + assert inference.is_list_like(obj, allow_sets=False) == expected + + +def test_is_list_like_recursion(): + # GH 33721 + # interpreter would crash with SIGABRT + def list_like(): + inference.is_list_like([]) + list_like() + + rec_limit = sys.getrecursionlimit() + try: + # Limit to avoid stack overflow on Windows CI + sys.setrecursionlimit(100) + with tm.external_error_raised(RecursionError): + list_like() + finally: + sys.setrecursionlimit(rec_limit) + + +def test_is_list_like_iter_is_none(): + # GH 43373 + # is_list_like was yielding false positives with __iter__ == None + class NotListLike: + def __getitem__(self, item): + return self + + __iter__ = None + + assert not inference.is_list_like(NotListLike()) + + +def test_is_list_like_generic(): + # GH 49649 + # is_list_like was yielding false positives for Generic classes in python 3.11 + T = TypeVar("T") + + class MyDataFrame(DataFrame, Generic[T]): + ... + + tstc = MyDataFrame[int] + tst = MyDataFrame[int]({"x": [1, 2, 3]}) + + assert not inference.is_list_like(tstc) + assert isinstance(tst, DataFrame) + assert inference.is_list_like(tst) + + +def test_is_sequence(): + is_seq = inference.is_sequence + assert is_seq((1, 2)) + assert is_seq([1, 2]) + assert not is_seq("abcd") + assert not is_seq(np.int64) + + class A: + def __getitem__(self, item): + return 1 + + assert not is_seq(A()) + + +def test_is_array_like(): + assert inference.is_array_like(Series([], dtype=object)) + assert inference.is_array_like(Series([1, 2])) + assert inference.is_array_like(np.array(["a", "b"])) + assert inference.is_array_like(Index(["2016-01-01"])) + assert inference.is_array_like(np.array([2, 3])) + assert inference.is_array_like(MockNumpyLikeArray(np.array([2, 3]))) + + class DtypeList(list): + dtype = "special" + + assert inference.is_array_like(DtypeList()) + + assert not inference.is_array_like([1, 2, 3]) + assert not inference.is_array_like(()) + assert not inference.is_array_like("foo") + assert not inference.is_array_like(123) + + +@pytest.mark.parametrize( + "inner", + [ + [], + [1], + (1,), + (1, 2), + {"a": 1}, + {1, "a"}, + Series([1]), + Series([], dtype=object), + Series(["a"]).str, + (x for x in range(5)), + ], +) +@pytest.mark.parametrize("outer", [list, Series, np.array, tuple]) +def test_is_nested_list_like_passes(inner, outer): + result = outer([inner for _ in range(5)]) + assert inference.is_list_like(result) + + +@pytest.mark.parametrize( + "obj", + [ + "abc", + [], + [1], + (1,), + ["a"], + "a", + {"a"}, + [1, 2, 3], + Series([1]), + DataFrame({"A": [1]}), + ([1, 2] for _ in range(5)), + ], +) +def test_is_nested_list_like_fails(obj): + assert not inference.is_nested_list_like(obj) + + +@pytest.mark.parametrize("ll", [{}, {"A": 1}, Series([1]), collections.defaultdict()]) +def test_is_dict_like_passes(ll): + assert inference.is_dict_like(ll) + + +@pytest.mark.parametrize( + "ll", + [ + "1", + 1, + [1, 2], + (1, 2), + range(2), + Index([1]), + dict, + collections.defaultdict, + Series, + ], +) +def test_is_dict_like_fails(ll): + assert not inference.is_dict_like(ll) + + +@pytest.mark.parametrize("has_keys", [True, False]) +@pytest.mark.parametrize("has_getitem", [True, False]) +@pytest.mark.parametrize("has_contains", [True, False]) +def test_is_dict_like_duck_type(has_keys, has_getitem, has_contains): + class DictLike: + def __init__(self, d) -> None: + self.d = d + + if has_keys: + + def keys(self): + return self.d.keys() + + if has_getitem: + + def __getitem__(self, key): + return self.d.__getitem__(key) + + if has_contains: + + def __contains__(self, key) -> bool: + return self.d.__contains__(key) + + d = DictLike({1: 2}) + result = inference.is_dict_like(d) + expected = has_keys and has_getitem and has_contains + + assert result is expected + + +def test_is_file_like(): + class MockFile: + pass + + is_file = inference.is_file_like + + data = StringIO("data") + assert is_file(data) + + # No read / write attributes + # No iterator attributes + m = MockFile() + assert not is_file(m) + + MockFile.write = lambda self: 0 + + # Write attribute but not an iterator + m = MockFile() + assert not is_file(m) + + # gh-16530: Valid iterator just means we have the + # __iter__ attribute for our purposes. + MockFile.__iter__ = lambda self: self + + # Valid write-only file + m = MockFile() + assert is_file(m) + + del MockFile.write + MockFile.read = lambda self: 0 + + # Valid read-only file + m = MockFile() + assert is_file(m) + + # Iterator but no read / write attributes + data = [1, 2, 3] + assert not is_file(data) + + +test_tuple = collections.namedtuple("test_tuple", ["a", "b", "c"]) + + +@pytest.mark.parametrize("ll", [test_tuple(1, 2, 3)]) +def test_is_names_tuple_passes(ll): + assert inference.is_named_tuple(ll) + + +@pytest.mark.parametrize("ll", [(1, 2, 3), "a", Series({"pi": 3.14})]) +def test_is_names_tuple_fails(ll): + assert not inference.is_named_tuple(ll) + + +def test_is_hashable(): + # all new-style classes are hashable by default + class HashableClass: + pass + + class UnhashableClass1: + __hash__ = None + + class UnhashableClass2: + def __hash__(self): + raise TypeError("Not hashable") + + hashable = (1, 3.14, np.float64(3.14), "a", (), (1,), HashableClass()) + not_hashable = ([], UnhashableClass1()) + abc_hashable_not_really_hashable = (([],), UnhashableClass2()) + + for i in hashable: + assert inference.is_hashable(i) + for i in not_hashable: + assert not inference.is_hashable(i) + for i in abc_hashable_not_really_hashable: + assert not inference.is_hashable(i) + + # numpy.array is no longer collections.abc.Hashable as of + # https://github.com/numpy/numpy/pull/5326, just test + # is_hashable() + assert not inference.is_hashable(np.array([])) + + +@pytest.mark.parametrize("ll", [re.compile("ad")]) +def test_is_re_passes(ll): + assert inference.is_re(ll) + + +@pytest.mark.parametrize("ll", ["x", 2, 3, object()]) +def test_is_re_fails(ll): + assert not inference.is_re(ll) + + +@pytest.mark.parametrize( + "ll", [r"a", "x", r"asdf", re.compile("adsf"), r"\u2233\s*", re.compile(r"")] +) +def test_is_recompilable_passes(ll): + assert inference.is_re_compilable(ll) + + +@pytest.mark.parametrize("ll", [1, [], object()]) +def test_is_recompilable_fails(ll): + assert not inference.is_re_compilable(ll) + + +class TestInference: + @pytest.mark.parametrize( + "arr", + [ + np.array(list("abc"), dtype="S1"), + np.array(list("abc"), dtype="S1").astype(object), + [b"a", np.nan, b"c"], + ], + ) + def test_infer_dtype_bytes(self, arr): + result = lib.infer_dtype(arr, skipna=True) + assert result == "bytes" + + @pytest.mark.parametrize( + "value, expected", + [ + (float("inf"), True), + (np.inf, True), + (-np.inf, False), + (1, False), + ("a", False), + ], + ) + def test_isposinf_scalar(self, value, expected): + # GH 11352 + result = libmissing.isposinf_scalar(value) + assert result is expected + + @pytest.mark.parametrize( + "value, expected", + [ + (float("-inf"), True), + (-np.inf, True), + (np.inf, False), + (1, False), + ("a", False), + ], + ) + def test_isneginf_scalar(self, value, expected): + result = libmissing.isneginf_scalar(value) + assert result is expected + + @pytest.mark.parametrize( + "convert_to_masked_nullable, exp", + [ + ( + True, + BooleanArray( + np.array([True, False], dtype="bool"), np.array([False, True]) + ), + ), + (False, np.array([True, np.nan], dtype="object")), + ], + ) + def test_maybe_convert_nullable_boolean(self, convert_to_masked_nullable, exp): + # GH 40687 + arr = np.array([True, np.nan], dtype=object) + result = libops.maybe_convert_bool( + arr, set(), convert_to_masked_nullable=convert_to_masked_nullable + ) + if convert_to_masked_nullable: + tm.assert_extension_array_equal(BooleanArray(*result), exp) + else: + result = result[0] + tm.assert_numpy_array_equal(result, exp) + + @pytest.mark.parametrize("convert_to_masked_nullable", [True, False]) + @pytest.mark.parametrize("coerce_numeric", [True, False]) + @pytest.mark.parametrize( + "infinity", ["inf", "inF", "iNf", "Inf", "iNF", "InF", "INf", "INF"] + ) + @pytest.mark.parametrize("prefix", ["", "-", "+"]) + def test_maybe_convert_numeric_infinities( + self, coerce_numeric, infinity, prefix, convert_to_masked_nullable + ): + # see gh-13274 + result, _ = lib.maybe_convert_numeric( + np.array([prefix + infinity], dtype=object), + na_values={"", "NULL", "nan"}, + coerce_numeric=coerce_numeric, + convert_to_masked_nullable=convert_to_masked_nullable, + ) + expected = np.array([np.inf if prefix in ["", "+"] else -np.inf]) + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize("convert_to_masked_nullable", [True, False]) + def test_maybe_convert_numeric_infinities_raises(self, convert_to_masked_nullable): + msg = "Unable to parse string" + with pytest.raises(ValueError, match=msg): + lib.maybe_convert_numeric( + np.array(["foo_inf"], dtype=object), + na_values={"", "NULL", "nan"}, + coerce_numeric=False, + convert_to_masked_nullable=convert_to_masked_nullable, + ) + + @pytest.mark.parametrize("convert_to_masked_nullable", [True, False]) + def test_maybe_convert_numeric_post_floatify_nan( + self, coerce, convert_to_masked_nullable + ): + # see gh-13314 + data = np.array(["1.200", "-999.000", "4.500"], dtype=object) + expected = np.array([1.2, np.nan, 4.5], dtype=np.float64) + nan_values = {-999, -999.0} + + out = lib.maybe_convert_numeric( + data, + nan_values, + coerce, + convert_to_masked_nullable=convert_to_masked_nullable, + ) + if convert_to_masked_nullable: + expected = FloatingArray(expected, np.isnan(expected)) + tm.assert_extension_array_equal(expected, FloatingArray(*out)) + else: + out = out[0] + tm.assert_numpy_array_equal(out, expected) + + def test_convert_infs(self): + arr = np.array(["inf", "inf", "inf"], dtype="O") + result, _ = lib.maybe_convert_numeric(arr, set(), False) + assert result.dtype == np.float64 + + arr = np.array(["-inf", "-inf", "-inf"], dtype="O") + result, _ = lib.maybe_convert_numeric(arr, set(), False) + assert result.dtype == np.float64 + + def test_scientific_no_exponent(self): + # See PR 12215 + arr = np.array(["42E", "2E", "99e", "6e"], dtype="O") + result, _ = lib.maybe_convert_numeric(arr, set(), False, True) + assert np.all(np.isnan(result)) + + def test_convert_non_hashable(self): + # GH13324 + # make sure that we are handing non-hashables + arr = np.array([[10.0, 2], 1.0, "apple"], dtype=object) + result, _ = lib.maybe_convert_numeric(arr, set(), False, True) + tm.assert_numpy_array_equal(result, np.array([np.nan, 1.0, np.nan])) + + def test_convert_numeric_uint64(self): + arr = np.array([2**63], dtype=object) + exp = np.array([2**63], dtype=np.uint64) + tm.assert_numpy_array_equal(lib.maybe_convert_numeric(arr, set())[0], exp) + + arr = np.array([str(2**63)], dtype=object) + exp = np.array([2**63], dtype=np.uint64) + tm.assert_numpy_array_equal(lib.maybe_convert_numeric(arr, set())[0], exp) + + arr = np.array([np.uint64(2**63)], dtype=object) + exp = np.array([2**63], dtype=np.uint64) + tm.assert_numpy_array_equal(lib.maybe_convert_numeric(arr, set())[0], exp) + + @pytest.mark.parametrize( + "arr", + [ + np.array([2**63, np.nan], dtype=object), + np.array([str(2**63), np.nan], dtype=object), + np.array([np.nan, 2**63], dtype=object), + np.array([np.nan, str(2**63)], dtype=object), + ], + ) + def test_convert_numeric_uint64_nan(self, coerce, arr): + expected = arr.astype(float) if coerce else arr.copy() + result, _ = lib.maybe_convert_numeric(arr, set(), coerce_numeric=coerce) + tm.assert_almost_equal(result, expected) + + @pytest.mark.parametrize("convert_to_masked_nullable", [True, False]) + def test_convert_numeric_uint64_nan_values( + self, coerce, convert_to_masked_nullable + ): + arr = np.array([2**63, 2**63 + 1], dtype=object) + na_values = {2**63} + + expected = ( + np.array([np.nan, 2**63 + 1], dtype=float) if coerce else arr.copy() + ) + result = lib.maybe_convert_numeric( + arr, + na_values, + coerce_numeric=coerce, + convert_to_masked_nullable=convert_to_masked_nullable, + ) + if convert_to_masked_nullable and coerce: + expected = IntegerArray( + np.array([0, 2**63 + 1], dtype="u8"), + np.array([True, False], dtype="bool"), + ) + result = IntegerArray(*result) + else: + result = result[0] # discard mask + tm.assert_almost_equal(result, expected) + + @pytest.mark.parametrize( + "case", + [ + np.array([2**63, -1], dtype=object), + np.array([str(2**63), -1], dtype=object), + np.array([str(2**63), str(-1)], dtype=object), + np.array([-1, 2**63], dtype=object), + np.array([-1, str(2**63)], dtype=object), + np.array([str(-1), str(2**63)], dtype=object), + ], + ) + @pytest.mark.parametrize("convert_to_masked_nullable", [True, False]) + def test_convert_numeric_int64_uint64( + self, case, coerce, convert_to_masked_nullable + ): + expected = case.astype(float) if coerce else case.copy() + result, _ = lib.maybe_convert_numeric( + case, + set(), + coerce_numeric=coerce, + convert_to_masked_nullable=convert_to_masked_nullable, + ) + + tm.assert_almost_equal(result, expected) + + @pytest.mark.parametrize("convert_to_masked_nullable", [True, False]) + def test_convert_numeric_string_uint64(self, convert_to_masked_nullable): + # GH32394 + result = lib.maybe_convert_numeric( + np.array(["uint64"], dtype=object), + set(), + coerce_numeric=True, + convert_to_masked_nullable=convert_to_masked_nullable, + ) + if convert_to_masked_nullable: + result = FloatingArray(*result) + else: + result = result[0] + assert np.isnan(result) + + @pytest.mark.parametrize("value", [-(2**63) - 1, 2**64]) + def test_convert_int_overflow(self, value): + # see gh-18584 + arr = np.array([value], dtype=object) + result = lib.maybe_convert_objects(arr) + tm.assert_numpy_array_equal(arr, result) + + @pytest.mark.parametrize("val", [None, np.nan, float("nan")]) + @pytest.mark.parametrize("dtype", ["M8[ns]", "m8[ns]"]) + def test_maybe_convert_objects_nat_inference(self, val, dtype): + dtype = np.dtype(dtype) + vals = np.array([pd.NaT, val], dtype=object) + result = lib.maybe_convert_objects( + vals, + convert_non_numeric=True, + dtype_if_all_nat=dtype, + ) + assert result.dtype == dtype + assert np.isnat(result).all() + + result = lib.maybe_convert_objects( + vals[::-1], + convert_non_numeric=True, + dtype_if_all_nat=dtype, + ) + assert result.dtype == dtype + assert np.isnat(result).all() + + @pytest.mark.parametrize( + "value, expected_dtype", + [ + # see gh-4471 + ([2**63], np.uint64), + # NumPy bug: can't compare uint64 to int64, as that + # results in both casting to float64, so we should + # make sure that this function is robust against it + ([np.uint64(2**63)], np.uint64), + ([2, -1], np.int64), + ([2**63, -1], object), + # GH#47294 + ([np.uint8(1)], np.uint8), + ([np.uint16(1)], np.uint16), + ([np.uint32(1)], np.uint32), + ([np.uint64(1)], np.uint64), + ([np.uint8(2), np.uint16(1)], np.uint16), + ([np.uint32(2), np.uint16(1)], np.uint32), + ([np.uint32(2), -1], object), + ([np.uint32(2), 1], np.uint64), + ([np.uint32(2), np.int32(1)], object), + ], + ) + def test_maybe_convert_objects_uint(self, value, expected_dtype): + arr = np.array(value, dtype=object) + exp = np.array(value, dtype=expected_dtype) + tm.assert_numpy_array_equal(lib.maybe_convert_objects(arr), exp) + + def test_maybe_convert_objects_datetime(self): + # GH27438 + arr = np.array( + [np.datetime64("2000-01-01"), np.timedelta64(1, "s")], dtype=object + ) + exp = arr.copy() + out = lib.maybe_convert_objects(arr, convert_non_numeric=True) + tm.assert_numpy_array_equal(out, exp) + + arr = np.array([pd.NaT, np.timedelta64(1, "s")], dtype=object) + exp = np.array([np.timedelta64("NaT"), np.timedelta64(1, "s")], dtype="m8[ns]") + out = lib.maybe_convert_objects(arr, convert_non_numeric=True) + tm.assert_numpy_array_equal(out, exp) + + # with convert_non_numeric=True, the nan is a valid NA value for td64 + arr = np.array([np.timedelta64(1, "s"), np.nan], dtype=object) + exp = exp[::-1] + out = lib.maybe_convert_objects(arr, convert_non_numeric=True) + tm.assert_numpy_array_equal(out, exp) + + def test_maybe_convert_objects_dtype_if_all_nat(self): + arr = np.array([pd.NaT, pd.NaT], dtype=object) + out = lib.maybe_convert_objects(arr, convert_non_numeric=True) + # no dtype_if_all_nat passed -> we dont guess + tm.assert_numpy_array_equal(out, arr) + + out = lib.maybe_convert_objects( + arr, + convert_non_numeric=True, + dtype_if_all_nat=np.dtype("timedelta64[ns]"), + ) + exp = np.array(["NaT", "NaT"], dtype="timedelta64[ns]") + tm.assert_numpy_array_equal(out, exp) + + out = lib.maybe_convert_objects( + arr, + convert_non_numeric=True, + dtype_if_all_nat=np.dtype("datetime64[ns]"), + ) + exp = np.array(["NaT", "NaT"], dtype="datetime64[ns]") + tm.assert_numpy_array_equal(out, exp) + + def test_maybe_convert_objects_dtype_if_all_nat_invalid(self): + # we accept datetime64[ns], timedelta64[ns], and EADtype + arr = np.array([pd.NaT, pd.NaT], dtype=object) + + with pytest.raises(ValueError, match="int64"): + lib.maybe_convert_objects( + arr, + convert_non_numeric=True, + dtype_if_all_nat=np.dtype("int64"), + ) + + @pytest.mark.parametrize("dtype", ["datetime64[ns]", "timedelta64[ns]"]) + def test_maybe_convert_objects_datetime_overflow_safe(self, dtype): + stamp = datetime(2363, 10, 4) # Enterprise-D launch date + if dtype == "timedelta64[ns]": + stamp = stamp - datetime(1970, 1, 1) + arr = np.array([stamp], dtype=object) + + out = lib.maybe_convert_objects(arr, convert_non_numeric=True) + # no OutOfBoundsDatetime/OutOfBoundsTimedeltas + tm.assert_numpy_array_equal(out, arr) + + def test_maybe_convert_objects_mixed_datetimes(self): + ts = Timestamp("now") + vals = [ts, ts.to_pydatetime(), ts.to_datetime64(), pd.NaT, np.nan, None] + + for data in itertools.permutations(vals): + data = np.array(list(data), dtype=object) + expected = DatetimeIndex(data)._data._ndarray + result = lib.maybe_convert_objects(data, convert_non_numeric=True) + tm.assert_numpy_array_equal(result, expected) + + def test_maybe_convert_objects_timedelta64_nat(self): + obj = np.timedelta64("NaT", "ns") + arr = np.array([obj], dtype=object) + assert arr[0] is obj + + result = lib.maybe_convert_objects(arr, convert_non_numeric=True) + + expected = np.array([obj], dtype="m8[ns]") + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize( + "exp", + [ + IntegerArray(np.array([2, 0], dtype="i8"), np.array([False, True])), + IntegerArray(np.array([2, 0], dtype="int64"), np.array([False, True])), + ], + ) + def test_maybe_convert_objects_nullable_integer(self, exp): + # GH27335 + arr = np.array([2, np.nan], dtype=object) + result = lib.maybe_convert_objects(arr, convert_to_nullable_dtype=True) + + tm.assert_extension_array_equal(result, exp) + + @pytest.mark.parametrize( + "dtype, val", [("int64", 1), ("uint64", np.iinfo(np.int64).max + 1)] + ) + def test_maybe_convert_objects_nullable_none(self, dtype, val): + # GH#50043 + arr = np.array([val, None, 3], dtype="object") + result = lib.maybe_convert_objects(arr, convert_to_nullable_dtype=True) + expected = IntegerArray( + np.array([val, 0, 3], dtype=dtype), np.array([False, True, False]) + ) + tm.assert_extension_array_equal(result, expected) + + @pytest.mark.parametrize( + "convert_to_masked_nullable, exp", + [ + (True, IntegerArray(np.array([2, 0], dtype="i8"), np.array([False, True]))), + (False, np.array([2, np.nan], dtype="float64")), + ], + ) + def test_maybe_convert_numeric_nullable_integer( + self, convert_to_masked_nullable, exp + ): + # GH 40687 + arr = np.array([2, np.nan], dtype=object) + result = lib.maybe_convert_numeric( + arr, set(), convert_to_masked_nullable=convert_to_masked_nullable + ) + if convert_to_masked_nullable: + result = IntegerArray(*result) + tm.assert_extension_array_equal(result, exp) + else: + result = result[0] + tm.assert_numpy_array_equal(result, exp) + + @pytest.mark.parametrize( + "convert_to_masked_nullable, exp", + [ + ( + True, + FloatingArray( + np.array([2.0, 0.0], dtype="float64"), np.array([False, True]) + ), + ), + (False, np.array([2.0, np.nan], dtype="float64")), + ], + ) + def test_maybe_convert_numeric_floating_array( + self, convert_to_masked_nullable, exp + ): + # GH 40687 + arr = np.array([2.0, np.nan], dtype=object) + result = lib.maybe_convert_numeric( + arr, set(), convert_to_masked_nullable=convert_to_masked_nullable + ) + if convert_to_masked_nullable: + tm.assert_extension_array_equal(FloatingArray(*result), exp) + else: + result = result[0] + tm.assert_numpy_array_equal(result, exp) + + def test_maybe_convert_objects_bool_nan(self): + # GH32146 + ind = Index([True, False, np.nan], dtype=object) + exp = np.array([True, False, np.nan], dtype=object) + out = lib.maybe_convert_objects(ind.values, safe=1) + tm.assert_numpy_array_equal(out, exp) + + def test_maybe_convert_objects_nullable_boolean(self): + # GH50047 + arr = np.array([True, False], dtype=object) + exp = np.array([True, False]) + out = lib.maybe_convert_objects(arr, convert_to_nullable_dtype=True) + tm.assert_numpy_array_equal(out, exp) + + arr = np.array([True, False, pd.NaT], dtype=object) + exp = np.array([True, False, pd.NaT], dtype=object) + out = lib.maybe_convert_objects(arr, convert_to_nullable_dtype=True) + tm.assert_numpy_array_equal(out, exp) + + @pytest.mark.parametrize("val", [None, np.nan]) + def test_maybe_convert_objects_nullable_boolean_na(self, val): + # GH50047 + arr = np.array([True, False, val], dtype=object) + exp = BooleanArray( + np.array([True, False, False]), np.array([False, False, True]) + ) + out = lib.maybe_convert_objects(arr, convert_to_nullable_dtype=True) + tm.assert_extension_array_equal(out, exp) + + @pytest.mark.parametrize( + "data0", + [ + True, + 1, + 1.0, + 1.0 + 1.0j, + np.int8(1), + np.int16(1), + np.int32(1), + np.int64(1), + np.float16(1), + np.float32(1), + np.float64(1), + np.complex64(1), + np.complex128(1), + ], + ) + @pytest.mark.parametrize( + "data1", + [ + True, + 1, + 1.0, + 1.0 + 1.0j, + np.int8(1), + np.int16(1), + np.int32(1), + np.int64(1), + np.float16(1), + np.float32(1), + np.float64(1), + np.complex64(1), + np.complex128(1), + ], + ) + def test_maybe_convert_objects_itemsize(self, data0, data1): + # GH 40908 + data = [data0, data1] + arr = np.array(data, dtype="object") + + common_kind = np.result_type(type(data0), type(data1)).kind + kind0 = "python" if not hasattr(data0, "dtype") else data0.dtype.kind + kind1 = "python" if not hasattr(data1, "dtype") else data1.dtype.kind + if kind0 != "python" and kind1 != "python": + kind = common_kind + itemsize = max(data0.dtype.itemsize, data1.dtype.itemsize) + elif is_bool(data0) or is_bool(data1): + kind = "bool" if (is_bool(data0) and is_bool(data1)) else "object" + itemsize = "" + elif is_complex(data0) or is_complex(data1): + kind = common_kind + itemsize = 16 + else: + kind = common_kind + itemsize = 8 + + expected = np.array(data, dtype=f"{kind}{itemsize}") + result = lib.maybe_convert_objects(arr) + tm.assert_numpy_array_equal(result, expected) + + def test_mixed_dtypes_remain_object_array(self): + # GH14956 + arr = np.array([datetime(2015, 1, 1, tzinfo=pytz.utc), 1], dtype=object) + result = lib.maybe_convert_objects(arr, convert_non_numeric=True) + tm.assert_numpy_array_equal(result, arr) + + @pytest.mark.parametrize( + "idx", + [ + pd.IntervalIndex.from_breaks(range(5), closed="both"), + pd.period_range("2016-01-01", periods=3, freq="D"), + ], + ) + def test_maybe_convert_objects_ea(self, idx): + result = lib.maybe_convert_objects( + np.array(idx, dtype=object), + convert_non_numeric=True, + ) + tm.assert_extension_array_equal(result, idx._data) + + +class TestTypeInference: + # Dummy class used for testing with Python objects + class Dummy: + pass + + def test_inferred_dtype_fixture(self, any_skipna_inferred_dtype): + # see pandas/conftest.py + inferred_dtype, values = any_skipna_inferred_dtype + + # make sure the inferred dtype of the fixture is as requested + assert inferred_dtype == lib.infer_dtype(values, skipna=True) + + @pytest.mark.parametrize("skipna", [True, False]) + def test_length_zero(self, skipna): + result = lib.infer_dtype(np.array([], dtype="i4"), skipna=skipna) + assert result == "integer" + + result = lib.infer_dtype([], skipna=skipna) + assert result == "empty" + + # GH 18004 + arr = np.array([np.array([], dtype=object), np.array([], dtype=object)]) + result = lib.infer_dtype(arr, skipna=skipna) + assert result == "empty" + + def test_integers(self): + arr = np.array([1, 2, 3, np.int64(4), np.int32(5)], dtype="O") + result = lib.infer_dtype(arr, skipna=True) + assert result == "integer" + + arr = np.array([1, 2, 3, np.int64(4), np.int32(5), "foo"], dtype="O") + result = lib.infer_dtype(arr, skipna=True) + assert result == "mixed-integer" + + arr = np.array([1, 2, 3, 4, 5], dtype="i4") + result = lib.infer_dtype(arr, skipna=True) + assert result == "integer" + + @pytest.mark.parametrize( + "arr, skipna", + [ + (np.array([1, 2, np.nan, np.nan, 3], dtype="O"), False), + (np.array([1, 2, np.nan, np.nan, 3], dtype="O"), True), + (np.array([1, 2, 3, np.int64(4), np.int32(5), np.nan], dtype="O"), False), + (np.array([1, 2, 3, np.int64(4), np.int32(5), np.nan], dtype="O"), True), + ], + ) + def test_integer_na(self, arr, skipna): + # GH 27392 + result = lib.infer_dtype(arr, skipna=skipna) + expected = "integer" if skipna else "integer-na" + assert result == expected + + def test_infer_dtype_skipna_default(self): + # infer_dtype `skipna` default deprecated in GH#24050, + # changed to True in GH#29876 + arr = np.array([1, 2, 3, np.nan], dtype=object) + + result = lib.infer_dtype(arr) + assert result == "integer" + + def test_bools(self): + arr = np.array([True, False, True, True, True], dtype="O") + result = lib.infer_dtype(arr, skipna=True) + assert result == "boolean" + + arr = np.array([np.bool_(True), np.bool_(False)], dtype="O") + result = lib.infer_dtype(arr, skipna=True) + assert result == "boolean" + + arr = np.array([True, False, True, "foo"], dtype="O") + result = lib.infer_dtype(arr, skipna=True) + assert result == "mixed" + + arr = np.array([True, False, True], dtype=bool) + result = lib.infer_dtype(arr, skipna=True) + assert result == "boolean" + + arr = np.array([True, np.nan, False], dtype="O") + result = lib.infer_dtype(arr, skipna=True) + assert result == "boolean" + + result = lib.infer_dtype(arr, skipna=False) + assert result == "mixed" + + def test_floats(self): + arr = np.array([1.0, 2.0, 3.0, np.float64(4), np.float32(5)], dtype="O") + result = lib.infer_dtype(arr, skipna=True) + assert result == "floating" + + arr = np.array([1, 2, 3, np.float64(4), np.float32(5), "foo"], dtype="O") + result = lib.infer_dtype(arr, skipna=True) + assert result == "mixed-integer" + + arr = np.array([1, 2, 3, 4, 5], dtype="f4") + result = lib.infer_dtype(arr, skipna=True) + assert result == "floating" + + arr = np.array([1, 2, 3, 4, 5], dtype="f8") + result = lib.infer_dtype(arr, skipna=True) + assert result == "floating" + + def test_decimals(self): + # GH15690 + arr = np.array([Decimal(1), Decimal(2), Decimal(3)]) + result = lib.infer_dtype(arr, skipna=True) + assert result == "decimal" + + arr = np.array([1.0, 2.0, Decimal(3)]) + result = lib.infer_dtype(arr, skipna=True) + assert result == "mixed" + + result = lib.infer_dtype(arr[::-1], skipna=True) + assert result == "mixed" + + arr = np.array([Decimal(1), Decimal("NaN"), Decimal(3)]) + result = lib.infer_dtype(arr, skipna=True) + assert result == "decimal" + + arr = np.array([Decimal(1), np.nan, Decimal(3)], dtype="O") + result = lib.infer_dtype(arr, skipna=True) + assert result == "decimal" + + # complex is compatible with nan, so skipna has no effect + @pytest.mark.parametrize("skipna", [True, False]) + def test_complex(self, skipna): + # gets cast to complex on array construction + arr = np.array([1.0, 2.0, 1 + 1j]) + result = lib.infer_dtype(arr, skipna=skipna) + assert result == "complex" + + arr = np.array([1.0, 2.0, 1 + 1j], dtype="O") + result = lib.infer_dtype(arr, skipna=skipna) + assert result == "mixed" + + result = lib.infer_dtype(arr[::-1], skipna=skipna) + assert result == "mixed" + + # gets cast to complex on array construction + arr = np.array([1, np.nan, 1 + 1j]) + result = lib.infer_dtype(arr, skipna=skipna) + assert result == "complex" + + arr = np.array([1.0, np.nan, 1 + 1j], dtype="O") + result = lib.infer_dtype(arr, skipna=skipna) + assert result == "mixed" + + # complex with nans stays complex + arr = np.array([1 + 1j, np.nan, 3 + 3j], dtype="O") + result = lib.infer_dtype(arr, skipna=skipna) + assert result == "complex" + + # test smaller complex dtype; will pass through _try_infer_map fastpath + arr = np.array([1 + 1j, np.nan, 3 + 3j], dtype=np.complex64) + result = lib.infer_dtype(arr, skipna=skipna) + assert result == "complex" + + def test_string(self): + pass + + def test_unicode(self): + arr = ["a", np.nan, "c"] + result = lib.infer_dtype(arr, skipna=False) + # This currently returns "mixed", but it's not clear that's optimal. + # This could also return "string" or "mixed-string" + assert result == "mixed" + + # even though we use skipna, we are only skipping those NAs that are + # considered matching by is_string_array + arr = ["a", np.nan, "c"] + result = lib.infer_dtype(arr, skipna=True) + assert result == "string" + + arr = ["a", pd.NA, "c"] + result = lib.infer_dtype(arr, skipna=True) + assert result == "string" + + arr = ["a", pd.NaT, "c"] + result = lib.infer_dtype(arr, skipna=True) + assert result == "mixed" + + arr = ["a", "c"] + result = lib.infer_dtype(arr, skipna=False) + assert result == "string" + + @pytest.mark.parametrize( + "dtype, missing, skipna, expected", + [ + (float, np.nan, False, "floating"), + (float, np.nan, True, "floating"), + (object, np.nan, False, "floating"), + (object, np.nan, True, "empty"), + (object, None, False, "mixed"), + (object, None, True, "empty"), + ], + ) + @pytest.mark.parametrize("box", [Series, np.array]) + def test_object_empty(self, box, missing, dtype, skipna, expected): + # GH 23421 + arr = box([missing, missing], dtype=dtype) + + result = lib.infer_dtype(arr, skipna=skipna) + assert result == expected + + def test_datetime(self): + dates = [datetime(2012, 1, x) for x in range(1, 20)] + index = Index(dates) + assert index.inferred_type == "datetime64" + + def test_infer_dtype_datetime64(self): + arr = np.array( + [np.datetime64("2011-01-01"), np.datetime64("2011-01-01")], dtype=object + ) + assert lib.infer_dtype(arr, skipna=True) == "datetime64" + + @pytest.mark.parametrize("na_value", [pd.NaT, np.nan]) + def test_infer_dtype_datetime64_with_na(self, na_value): + # starts with nan + arr = np.array([na_value, np.datetime64("2011-01-02")]) + assert lib.infer_dtype(arr, skipna=True) == "datetime64" + + arr = np.array([na_value, np.datetime64("2011-01-02"), na_value]) + assert lib.infer_dtype(arr, skipna=True) == "datetime64" + + @pytest.mark.parametrize( + "arr", + [ + np.array( + [np.timedelta64("nat"), np.datetime64("2011-01-02")], dtype=object + ), + np.array( + [np.datetime64("2011-01-02"), np.timedelta64("nat")], dtype=object + ), + np.array([np.datetime64("2011-01-01"), Timestamp("2011-01-02")]), + np.array([Timestamp("2011-01-02"), np.datetime64("2011-01-01")]), + np.array([np.nan, Timestamp("2011-01-02"), 1.1]), + np.array([np.nan, "2011-01-01", Timestamp("2011-01-02")], dtype=object), + np.array([np.datetime64("nat"), np.timedelta64(1, "D")], dtype=object), + np.array([np.timedelta64(1, "D"), np.datetime64("nat")], dtype=object), + ], + ) + def test_infer_datetimelike_dtype_mixed(self, arr): + assert lib.infer_dtype(arr, skipna=False) == "mixed" + + def test_infer_dtype_mixed_integer(self): + arr = np.array([np.nan, Timestamp("2011-01-02"), 1]) + assert lib.infer_dtype(arr, skipna=True) == "mixed-integer" + + @pytest.mark.parametrize( + "arr", + [ + np.array([Timestamp("2011-01-01"), Timestamp("2011-01-02")]), + np.array([datetime(2011, 1, 1), datetime(2012, 2, 1)]), + np.array([datetime(2011, 1, 1), Timestamp("2011-01-02")]), + ], + ) + def test_infer_dtype_datetime(self, arr): + assert lib.infer_dtype(arr, skipna=True) == "datetime" + + @pytest.mark.parametrize("na_value", [pd.NaT, np.nan]) + @pytest.mark.parametrize( + "time_stamp", [Timestamp("2011-01-01"), datetime(2011, 1, 1)] + ) + def test_infer_dtype_datetime_with_na(self, na_value, time_stamp): + # starts with nan + arr = np.array([na_value, time_stamp]) + assert lib.infer_dtype(arr, skipna=True) == "datetime" + + arr = np.array([na_value, time_stamp, na_value]) + assert lib.infer_dtype(arr, skipna=True) == "datetime" + + @pytest.mark.parametrize( + "arr", + [ + np.array([Timedelta("1 days"), Timedelta("2 days")]), + np.array([np.timedelta64(1, "D"), np.timedelta64(2, "D")], dtype=object), + np.array([timedelta(1), timedelta(2)]), + ], + ) + def test_infer_dtype_timedelta(self, arr): + assert lib.infer_dtype(arr, skipna=True) == "timedelta" + + @pytest.mark.parametrize("na_value", [pd.NaT, np.nan]) + @pytest.mark.parametrize( + "delta", [Timedelta("1 days"), np.timedelta64(1, "D"), timedelta(1)] + ) + def test_infer_dtype_timedelta_with_na(self, na_value, delta): + # starts with nan + arr = np.array([na_value, delta]) + assert lib.infer_dtype(arr, skipna=True) == "timedelta" + + arr = np.array([na_value, delta, na_value]) + assert lib.infer_dtype(arr, skipna=True) == "timedelta" + + def test_infer_dtype_period(self): + # GH 13664 + arr = np.array([Period("2011-01", freq="D"), Period("2011-02", freq="D")]) + assert lib.infer_dtype(arr, skipna=True) == "period" + + # non-homogeneous freqs -> mixed + arr = np.array([Period("2011-01", freq="D"), Period("2011-02", freq="M")]) + assert lib.infer_dtype(arr, skipna=True) == "mixed" + + @pytest.mark.parametrize("klass", [pd.array, Series, Index]) + @pytest.mark.parametrize("skipna", [True, False]) + def test_infer_dtype_period_array(self, klass, skipna): + # https://github.com/pandas-dev/pandas/issues/23553 + values = klass( + [ + Period("2011-01-01", freq="D"), + Period("2011-01-02", freq="D"), + pd.NaT, + ] + ) + assert lib.infer_dtype(values, skipna=skipna) == "period" + + # periods but mixed freq + values = klass( + [ + Period("2011-01-01", freq="D"), + Period("2011-01-02", freq="M"), + pd.NaT, + ] + ) + # with pd.array this becomes NumpyExtensionArray which ends up + # as "unknown-array" + exp = "unknown-array" if klass is pd.array else "mixed" + assert lib.infer_dtype(values, skipna=skipna) == exp + + def test_infer_dtype_period_mixed(self): + arr = np.array( + [Period("2011-01", freq="M"), np.datetime64("nat")], dtype=object + ) + assert lib.infer_dtype(arr, skipna=False) == "mixed" + + arr = np.array( + [np.datetime64("nat"), Period("2011-01", freq="M")], dtype=object + ) + assert lib.infer_dtype(arr, skipna=False) == "mixed" + + @pytest.mark.parametrize("na_value", [pd.NaT, np.nan]) + def test_infer_dtype_period_with_na(self, na_value): + # starts with nan + arr = np.array([na_value, Period("2011-01", freq="D")]) + assert lib.infer_dtype(arr, skipna=True) == "period" + + arr = np.array([na_value, Period("2011-01", freq="D"), na_value]) + assert lib.infer_dtype(arr, skipna=True) == "period" + + def test_infer_dtype_all_nan_nat_like(self): + arr = np.array([np.nan, np.nan]) + assert lib.infer_dtype(arr, skipna=True) == "floating" + + # nan and None mix are result in mixed + arr = np.array([np.nan, np.nan, None]) + assert lib.infer_dtype(arr, skipna=True) == "empty" + assert lib.infer_dtype(arr, skipna=False) == "mixed" + + arr = np.array([None, np.nan, np.nan]) + assert lib.infer_dtype(arr, skipna=True) == "empty" + assert lib.infer_dtype(arr, skipna=False) == "mixed" + + # pd.NaT + arr = np.array([pd.NaT]) + assert lib.infer_dtype(arr, skipna=False) == "datetime" + + arr = np.array([pd.NaT, np.nan]) + assert lib.infer_dtype(arr, skipna=False) == "datetime" + + arr = np.array([np.nan, pd.NaT]) + assert lib.infer_dtype(arr, skipna=False) == "datetime" + + arr = np.array([np.nan, pd.NaT, np.nan]) + assert lib.infer_dtype(arr, skipna=False) == "datetime" + + arr = np.array([None, pd.NaT, None]) + assert lib.infer_dtype(arr, skipna=False) == "datetime" + + # np.datetime64(nat) + arr = np.array([np.datetime64("nat")]) + assert lib.infer_dtype(arr, skipna=False) == "datetime64" + + for n in [np.nan, pd.NaT, None]: + arr = np.array([n, np.datetime64("nat"), n]) + assert lib.infer_dtype(arr, skipna=False) == "datetime64" + + arr = np.array([pd.NaT, n, np.datetime64("nat"), n]) + assert lib.infer_dtype(arr, skipna=False) == "datetime64" + + arr = np.array([np.timedelta64("nat")], dtype=object) + assert lib.infer_dtype(arr, skipna=False) == "timedelta" + + for n in [np.nan, pd.NaT, None]: + arr = np.array([n, np.timedelta64("nat"), n]) + assert lib.infer_dtype(arr, skipna=False) == "timedelta" + + arr = np.array([pd.NaT, n, np.timedelta64("nat"), n]) + assert lib.infer_dtype(arr, skipna=False) == "timedelta" + + # datetime / timedelta mixed + arr = np.array([pd.NaT, np.datetime64("nat"), np.timedelta64("nat"), np.nan]) + assert lib.infer_dtype(arr, skipna=False) == "mixed" + + arr = np.array([np.timedelta64("nat"), np.datetime64("nat")], dtype=object) + assert lib.infer_dtype(arr, skipna=False) == "mixed" + + def test_is_datetimelike_array_all_nan_nat_like(self): + arr = np.array([np.nan, pd.NaT, np.datetime64("nat")]) + assert lib.is_datetime_array(arr) + assert lib.is_datetime64_array(arr) + assert not lib.is_timedelta_or_timedelta64_array(arr) + + arr = np.array([np.nan, pd.NaT, np.timedelta64("nat")]) + assert not lib.is_datetime_array(arr) + assert not lib.is_datetime64_array(arr) + assert lib.is_timedelta_or_timedelta64_array(arr) + + arr = np.array([np.nan, pd.NaT, np.datetime64("nat"), np.timedelta64("nat")]) + assert not lib.is_datetime_array(arr) + assert not lib.is_datetime64_array(arr) + assert not lib.is_timedelta_or_timedelta64_array(arr) + + arr = np.array([np.nan, pd.NaT]) + assert lib.is_datetime_array(arr) + assert lib.is_datetime64_array(arr) + assert lib.is_timedelta_or_timedelta64_array(arr) + + arr = np.array([np.nan, np.nan], dtype=object) + assert not lib.is_datetime_array(arr) + assert not lib.is_datetime64_array(arr) + assert not lib.is_timedelta_or_timedelta64_array(arr) + + assert lib.is_datetime_with_singletz_array( + np.array( + [ + Timestamp("20130101", tz="US/Eastern"), + Timestamp("20130102", tz="US/Eastern"), + ], + dtype=object, + ) + ) + assert not lib.is_datetime_with_singletz_array( + np.array( + [ + Timestamp("20130101", tz="US/Eastern"), + Timestamp("20130102", tz="CET"), + ], + dtype=object, + ) + ) + + @pytest.mark.parametrize( + "func", + [ + "is_datetime_array", + "is_datetime64_array", + "is_bool_array", + "is_timedelta_or_timedelta64_array", + "is_date_array", + "is_time_array", + "is_interval_array", + ], + ) + def test_other_dtypes_for_array(self, func): + func = getattr(lib, func) + arr = np.array(["foo", "bar"]) + assert not func(arr) + assert not func(arr.reshape(2, 1)) + + arr = np.array([1, 2]) + assert not func(arr) + assert not func(arr.reshape(2, 1)) + + def test_date(self): + dates = [date(2012, 1, day) for day in range(1, 20)] + index = Index(dates) + assert index.inferred_type == "date" + + dates = [date(2012, 1, day) for day in range(1, 20)] + [np.nan] + result = lib.infer_dtype(dates, skipna=False) + assert result == "mixed" + + result = lib.infer_dtype(dates, skipna=True) + assert result == "date" + + @pytest.mark.parametrize( + "values", + [ + [date(2020, 1, 1), Timestamp("2020-01-01")], + [Timestamp("2020-01-01"), date(2020, 1, 1)], + [date(2020, 1, 1), pd.NaT], + [pd.NaT, date(2020, 1, 1)], + ], + ) + @pytest.mark.parametrize("skipna", [True, False]) + def test_infer_dtype_date_order_invariant(self, values, skipna): + # https://github.com/pandas-dev/pandas/issues/33741 + result = lib.infer_dtype(values, skipna=skipna) + assert result == "date" + + def test_is_numeric_array(self): + assert lib.is_float_array(np.array([1, 2.0])) + assert lib.is_float_array(np.array([1, 2.0, np.nan])) + assert not lib.is_float_array(np.array([1, 2])) + + assert lib.is_integer_array(np.array([1, 2])) + assert not lib.is_integer_array(np.array([1, 2.0])) + + def test_is_string_array(self): + # We should only be accepting pd.NA, np.nan, + # other floating point nans e.g. float('nan')] + # when skipna is True. + assert lib.is_string_array(np.array(["foo", "bar"])) + assert not lib.is_string_array( + np.array(["foo", "bar", pd.NA], dtype=object), skipna=False + ) + assert lib.is_string_array( + np.array(["foo", "bar", pd.NA], dtype=object), skipna=True + ) + # we allow NaN/None in the StringArray constructor, so its allowed here + assert lib.is_string_array( + np.array(["foo", "bar", None], dtype=object), skipna=True + ) + assert lib.is_string_array( + np.array(["foo", "bar", np.nan], dtype=object), skipna=True + ) + # But not e.g. datetimelike or Decimal NAs + assert not lib.is_string_array( + np.array(["foo", "bar", pd.NaT], dtype=object), skipna=True + ) + assert not lib.is_string_array( + np.array(["foo", "bar", np.datetime64("NaT")], dtype=object), skipna=True + ) + assert not lib.is_string_array( + np.array(["foo", "bar", Decimal("NaN")], dtype=object), skipna=True + ) + + assert not lib.is_string_array( + np.array(["foo", "bar", None], dtype=object), skipna=False + ) + assert not lib.is_string_array( + np.array(["foo", "bar", np.nan], dtype=object), skipna=False + ) + assert not lib.is_string_array(np.array([1, 2])) + + @pytest.mark.parametrize( + "func", + [ + "is_bool_array", + "is_date_array", + "is_datetime_array", + "is_datetime64_array", + "is_float_array", + "is_integer_array", + "is_interval_array", + "is_string_array", + "is_time_array", + "is_timedelta_or_timedelta64_array", + ], + ) + def test_is_dtype_array_empty_obj(self, func): + # https://github.com/pandas-dev/pandas/pull/60796 + func = getattr(lib, func) + + arr = np.empty((2, 0), dtype=object) + assert not func(arr) + + arr = np.empty((0, 2), dtype=object) + assert not func(arr) + + def test_to_object_array_tuples(self): + r = (5, 6) + values = [r] + lib.to_object_array_tuples(values) + + # make sure record array works + record = namedtuple("record", "x y") + r = record(5, 6) + values = [r] + lib.to_object_array_tuples(values) + + def test_object(self): + # GH 7431 + # cannot infer more than this as only a single element + arr = np.array([None], dtype="O") + result = lib.infer_dtype(arr, skipna=False) + assert result == "mixed" + result = lib.infer_dtype(arr, skipna=True) + assert result == "empty" + + def test_to_object_array_width(self): + # see gh-13320 + rows = [[1, 2, 3], [4, 5, 6]] + + expected = np.array(rows, dtype=object) + out = lib.to_object_array(rows) + tm.assert_numpy_array_equal(out, expected) + + expected = np.array(rows, dtype=object) + out = lib.to_object_array(rows, min_width=1) + tm.assert_numpy_array_equal(out, expected) + + expected = np.array( + [[1, 2, 3, None, None], [4, 5, 6, None, None]], dtype=object + ) + out = lib.to_object_array(rows, min_width=5) + tm.assert_numpy_array_equal(out, expected) + + def test_is_period(self): + # GH#55264 + msg = "is_period is deprecated and will be removed in a future version" + with tm.assert_produces_warning(FutureWarning, match=msg): + assert lib.is_period(Period("2011-01", freq="M")) + assert not lib.is_period(PeriodIndex(["2011-01"], freq="M")) + assert not lib.is_period(Timestamp("2011-01")) + assert not lib.is_period(1) + assert not lib.is_period(np.nan) + + def test_is_interval(self): + # GH#55264 + msg = "is_interval is deprecated and will be removed in a future version" + item = Interval(1, 2) + with tm.assert_produces_warning(FutureWarning, match=msg): + assert lib.is_interval(item) + assert not lib.is_interval(pd.IntervalIndex([item])) + assert not lib.is_interval(pd.IntervalIndex([item])._engine) + + def test_categorical(self): + # GH 8974 + arr = Categorical(list("abc")) + result = lib.infer_dtype(arr, skipna=True) + assert result == "categorical" + + result = lib.infer_dtype(Series(arr), skipna=True) + assert result == "categorical" + + arr = Categorical(list("abc"), categories=["cegfab"], ordered=True) + result = lib.infer_dtype(arr, skipna=True) + assert result == "categorical" + + result = lib.infer_dtype(Series(arr), skipna=True) + assert result == "categorical" + + @pytest.mark.parametrize("asobject", [True, False]) + def test_interval(self, asobject): + idx = pd.IntervalIndex.from_breaks(range(5), closed="both") + if asobject: + idx = idx.astype(object) + + inferred = lib.infer_dtype(idx, skipna=False) + assert inferred == "interval" + + inferred = lib.infer_dtype(idx._data, skipna=False) + assert inferred == "interval" + + inferred = lib.infer_dtype(Series(idx, dtype=idx.dtype), skipna=False) + assert inferred == "interval" + + @pytest.mark.parametrize("value", [Timestamp(0), Timedelta(0), 0, 0.0]) + def test_interval_mismatched_closed(self, value): + first = Interval(value, value, closed="left") + second = Interval(value, value, closed="right") + + # if closed match, we should infer "interval" + arr = np.array([first, first], dtype=object) + assert lib.infer_dtype(arr, skipna=False) == "interval" + + # if closed dont match, we should _not_ get "interval" + arr2 = np.array([first, second], dtype=object) + assert lib.infer_dtype(arr2, skipna=False) == "mixed" + + def test_interval_mismatched_subtype(self): + first = Interval(0, 1, closed="left") + second = Interval(Timestamp(0), Timestamp(1), closed="left") + third = Interval(Timedelta(0), Timedelta(1), closed="left") + + arr = np.array([first, second]) + assert lib.infer_dtype(arr, skipna=False) == "mixed" + + arr = np.array([second, third]) + assert lib.infer_dtype(arr, skipna=False) == "mixed" + + arr = np.array([first, third]) + assert lib.infer_dtype(arr, skipna=False) == "mixed" + + # float vs int subdtype are compatible + flt_interval = Interval(1.5, 2.5, closed="left") + arr = np.array([first, flt_interval], dtype=object) + assert lib.infer_dtype(arr, skipna=False) == "interval" + + @pytest.mark.parametrize("klass", [pd.array, Series]) + @pytest.mark.parametrize("skipna", [True, False]) + @pytest.mark.parametrize("data", [["a", "b", "c"], ["a", "b", pd.NA]]) + def test_string_dtype(self, data, skipna, klass, nullable_string_dtype): + # StringArray + val = klass(data, dtype=nullable_string_dtype) + inferred = lib.infer_dtype(val, skipna=skipna) + assert inferred == "string" + + @pytest.mark.parametrize("klass", [pd.array, Series]) + @pytest.mark.parametrize("skipna", [True, False]) + @pytest.mark.parametrize("data", [[True, False, True], [True, False, pd.NA]]) + def test_boolean_dtype(self, data, skipna, klass): + # BooleanArray + val = klass(data, dtype="boolean") + inferred = lib.infer_dtype(val, skipna=skipna) + assert inferred == "boolean" + + +class TestNumberScalar: + def test_is_number(self): + assert is_number(True) + assert is_number(1) + assert is_number(1.1) + assert is_number(1 + 3j) + assert is_number(np.int64(1)) + assert is_number(np.float64(1.1)) + assert is_number(np.complex128(1 + 3j)) + assert is_number(np.nan) + + assert not is_number(None) + assert not is_number("x") + assert not is_number(datetime(2011, 1, 1)) + assert not is_number(np.datetime64("2011-01-01")) + assert not is_number(Timestamp("2011-01-01")) + assert not is_number(Timestamp("2011-01-01", tz="US/Eastern")) + assert not is_number(timedelta(1000)) + assert not is_number(Timedelta("1 days")) + + # questionable + assert not is_number(np.bool_(False)) + assert is_number(np.timedelta64(1, "D")) + + def test_is_bool(self): + assert is_bool(True) + assert is_bool(False) + assert is_bool(np.bool_(False)) + + assert not is_bool(1) + assert not is_bool(1.1) + assert not is_bool(1 + 3j) + assert not is_bool(np.int64(1)) + assert not is_bool(np.float64(1.1)) + assert not is_bool(np.complex128(1 + 3j)) + assert not is_bool(np.nan) + assert not is_bool(None) + assert not is_bool("x") + assert not is_bool(datetime(2011, 1, 1)) + assert not is_bool(np.datetime64("2011-01-01")) + assert not is_bool(Timestamp("2011-01-01")) + assert not is_bool(Timestamp("2011-01-01", tz="US/Eastern")) + assert not is_bool(timedelta(1000)) + assert not is_bool(np.timedelta64(1, "D")) + assert not is_bool(Timedelta("1 days")) + + def test_is_integer(self): + assert is_integer(1) + assert is_integer(np.int64(1)) + + assert not is_integer(True) + assert not is_integer(1.1) + assert not is_integer(1 + 3j) + assert not is_integer(False) + assert not is_integer(np.bool_(False)) + assert not is_integer(np.float64(1.1)) + assert not is_integer(np.complex128(1 + 3j)) + assert not is_integer(np.nan) + assert not is_integer(None) + assert not is_integer("x") + assert not is_integer(datetime(2011, 1, 1)) + assert not is_integer(np.datetime64("2011-01-01")) + assert not is_integer(Timestamp("2011-01-01")) + assert not is_integer(Timestamp("2011-01-01", tz="US/Eastern")) + assert not is_integer(timedelta(1000)) + assert not is_integer(Timedelta("1 days")) + assert not is_integer(np.timedelta64(1, "D")) + + def test_is_float(self): + assert is_float(1.1) + assert is_float(np.float64(1.1)) + assert is_float(np.nan) + + assert not is_float(True) + assert not is_float(1) + assert not is_float(1 + 3j) + assert not is_float(False) + assert not is_float(np.bool_(False)) + assert not is_float(np.int64(1)) + assert not is_float(np.complex128(1 + 3j)) + assert not is_float(None) + assert not is_float("x") + assert not is_float(datetime(2011, 1, 1)) + assert not is_float(np.datetime64("2011-01-01")) + assert not is_float(Timestamp("2011-01-01")) + assert not is_float(Timestamp("2011-01-01", tz="US/Eastern")) + assert not is_float(timedelta(1000)) + assert not is_float(np.timedelta64(1, "D")) + assert not is_float(Timedelta("1 days")) + + def test_is_datetime_dtypes(self): + ts = pd.date_range("20130101", periods=3) + tsa = pd.date_range("20130101", periods=3, tz="US/Eastern") + + msg = "is_datetime64tz_dtype is deprecated" + + assert is_datetime64_dtype("datetime64") + assert is_datetime64_dtype("datetime64[ns]") + assert is_datetime64_dtype(ts) + assert not is_datetime64_dtype(tsa) + + assert not is_datetime64_ns_dtype("datetime64") + assert is_datetime64_ns_dtype("datetime64[ns]") + assert is_datetime64_ns_dtype(ts) + assert is_datetime64_ns_dtype(tsa) + + assert is_datetime64_any_dtype("datetime64") + assert is_datetime64_any_dtype("datetime64[ns]") + assert is_datetime64_any_dtype(ts) + assert is_datetime64_any_dtype(tsa) + + with tm.assert_produces_warning(DeprecationWarning, match=msg): + assert not is_datetime64tz_dtype("datetime64") + assert not is_datetime64tz_dtype("datetime64[ns]") + assert not is_datetime64tz_dtype(ts) + assert is_datetime64tz_dtype(tsa) + + @pytest.mark.parametrize("tz", ["US/Eastern", "UTC"]) + def test_is_datetime_dtypes_with_tz(self, tz): + dtype = f"datetime64[ns, {tz}]" + assert not is_datetime64_dtype(dtype) + + msg = "is_datetime64tz_dtype is deprecated" + with tm.assert_produces_warning(DeprecationWarning, match=msg): + assert is_datetime64tz_dtype(dtype) + assert is_datetime64_ns_dtype(dtype) + assert is_datetime64_any_dtype(dtype) + + def test_is_timedelta(self): + assert is_timedelta64_dtype("timedelta64") + assert is_timedelta64_dtype("timedelta64[ns]") + assert not is_timedelta64_ns_dtype("timedelta64") + assert is_timedelta64_ns_dtype("timedelta64[ns]") + + tdi = TimedeltaIndex([1e14, 2e14], dtype="timedelta64[ns]") + assert is_timedelta64_dtype(tdi) + assert is_timedelta64_ns_dtype(tdi) + assert is_timedelta64_ns_dtype(tdi.astype("timedelta64[ns]")) + + assert not is_timedelta64_ns_dtype(Index([], dtype=np.float64)) + assert not is_timedelta64_ns_dtype(Index([], dtype=np.int64)) + + +class TestIsScalar: + def test_is_scalar_builtin_scalars(self): + assert is_scalar(None) + assert is_scalar(True) + assert is_scalar(False) + assert is_scalar(Fraction()) + assert is_scalar(0.0) + assert is_scalar(1) + assert is_scalar(complex(2)) + assert is_scalar(float("NaN")) + assert is_scalar(np.nan) + assert is_scalar("foobar") + assert is_scalar(b"foobar") + assert is_scalar(datetime(2014, 1, 1)) + assert is_scalar(date(2014, 1, 1)) + assert is_scalar(time(12, 0)) + assert is_scalar(timedelta(hours=1)) + assert is_scalar(pd.NaT) + assert is_scalar(pd.NA) + + def test_is_scalar_builtin_nonscalars(self): + assert not is_scalar({}) + assert not is_scalar([]) + assert not is_scalar([1]) + assert not is_scalar(()) + assert not is_scalar((1,)) + assert not is_scalar(slice(None)) + assert not is_scalar(Ellipsis) + + def test_is_scalar_numpy_array_scalars(self): + assert is_scalar(np.int64(1)) + assert is_scalar(np.float64(1.0)) + assert is_scalar(np.int32(1)) + assert is_scalar(np.complex64(2)) + assert is_scalar(np.object_("foobar")) + assert is_scalar(np.str_("foobar")) + assert is_scalar(np.bytes_(b"foobar")) + assert is_scalar(np.datetime64("2014-01-01")) + assert is_scalar(np.timedelta64(1, "h")) + + @pytest.mark.parametrize( + "zerodim", + [ + np.array(1), + np.array("foobar"), + np.array(np.datetime64("2014-01-01")), + np.array(np.timedelta64(1, "h")), + np.array(np.datetime64("NaT")), + ], + ) + def test_is_scalar_numpy_zerodim_arrays(self, zerodim): + assert not is_scalar(zerodim) + assert is_scalar(lib.item_from_zerodim(zerodim)) + + @pytest.mark.parametrize("arr", [np.array([]), np.array([[]])]) + def test_is_scalar_numpy_arrays(self, arr): + assert not is_scalar(arr) + assert not is_scalar(MockNumpyLikeArray(arr)) + + def test_is_scalar_pandas_scalars(self): + assert is_scalar(Timestamp("2014-01-01")) + assert is_scalar(Timedelta(hours=1)) + assert is_scalar(Period("2014-01-01")) + assert is_scalar(Interval(left=0, right=1)) + assert is_scalar(DateOffset(days=1)) + assert is_scalar(pd.offsets.Minute(3)) + + def test_is_scalar_pandas_containers(self): + assert not is_scalar(Series(dtype=object)) + assert not is_scalar(Series([1])) + assert not is_scalar(DataFrame()) + assert not is_scalar(DataFrame([[1]])) + assert not is_scalar(Index([])) + assert not is_scalar(Index([1])) + assert not is_scalar(Categorical([])) + assert not is_scalar(DatetimeIndex([])._data) + assert not is_scalar(TimedeltaIndex([])._data) + assert not is_scalar(DatetimeIndex([])._data.to_period("D")) + assert not is_scalar(pd.array([1, 2, 3])) + + def test_is_scalar_number(self): + # Number() is not recognied by PyNumber_Check, so by extension + # is not recognized by is_scalar, but instances of non-abstract + # subclasses are. + + class Numeric(Number): + def __init__(self, value) -> None: + self.value = value + + def __int__(self) -> int: + return self.value + + num = Numeric(1) + assert is_scalar(num) + + +@pytest.mark.parametrize("unit", ["ms", "us", "ns"]) +def test_datetimeindex_from_empty_datetime64_array(unit): + idx = DatetimeIndex(np.array([], dtype=f"datetime64[{unit}]")) + assert len(idx) == 0 + + +def test_nan_to_nat_conversions(): + df = DataFrame( + {"A": np.asarray(range(10), dtype="float64"), "B": Timestamp("20010101")} + ) + df.iloc[3:6, :] = np.nan + result = df.loc[4, "B"] + assert result is pd.NaT + + s = df["B"].copy() + s[8:9] = np.nan + assert s[8] is pd.NaT + + +@pytest.mark.filterwarnings("ignore::PendingDeprecationWarning") +def test_is_scipy_sparse(spmatrix): + pytest.importorskip("scipy") + assert is_scipy_sparse(spmatrix([[0, 1]])) + assert not is_scipy_sparse(np.array([1])) + + +def test_ensure_int32(): + values = np.arange(10, dtype=np.int32) + result = ensure_int32(values) + assert result.dtype == np.int32 + + values = np.arange(10, dtype=np.int64) + result = ensure_int32(values) + assert result.dtype == np.int32 + + +@pytest.mark.parametrize( + "right,result", + [ + (0, np.uint8), + (-1, np.int16), + (300, np.uint16), + # For floats, we just upcast directly to float64 instead of trying to + # find a smaller floating dtype + (300.0, np.uint16), # for integer floats, we convert them to ints + (300.1, np.float64), + (np.int16(300), np.int16 if np_version_gt2 else np.uint16), + ], +) +def test_find_result_type_uint_int(right, result): + left_dtype = np.dtype("uint8") + assert find_result_type(left_dtype, right) == result + + +@pytest.mark.parametrize( + "right,result", + [ + (0, np.int8), + (-1, np.int8), + (300, np.int16), + # For floats, we just upcast directly to float64 instead of trying to + # find a smaller floating dtype + (300.0, np.int16), # for integer floats, we convert them to ints + (300.1, np.float64), + (np.int16(300), np.int16), + ], +) +def test_find_result_type_int_int(right, result): + left_dtype = np.dtype("int8") + assert find_result_type(left_dtype, right) == result + + +@pytest.mark.parametrize( + "right,result", + [ + (300.0, np.float64), + (np.float32(300), np.float32), + ], +) +def test_find_result_type_floats(right, result): + left_dtype = np.dtype("float16") + assert find_result_type(left_dtype, right) == result diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/test_missing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/test_missing.py new file mode 100644 index 0000000000000000000000000000000000000000..e3d3e98ae2b93f0a182ea15a3a11d6af39fd2f05 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/dtypes/test_missing.py @@ -0,0 +1,923 @@ +from contextlib import nullcontext +from datetime import datetime +from decimal import Decimal + +import numpy as np +import pytest + +from pandas._config import config as cf + +from pandas._libs import missing as libmissing +from pandas._libs.tslibs import iNaT +from pandas.compat.numpy import np_version_gte1p25 + +from pandas.core.dtypes.common import ( + is_float, + is_scalar, + pandas_dtype, +) +from pandas.core.dtypes.dtypes import ( + CategoricalDtype, + DatetimeTZDtype, + IntervalDtype, + PeriodDtype, +) +from pandas.core.dtypes.missing import ( + array_equivalent, + is_valid_na_for_dtype, + isna, + isnull, + na_value_for_dtype, + notna, + notnull, +) + +import pandas as pd +from pandas import ( + DatetimeIndex, + Index, + NaT, + Series, + TimedeltaIndex, + date_range, + period_range, +) +import pandas._testing as tm + +fix_now = pd.Timestamp("2021-01-01") +fix_utcnow = pd.Timestamp("2021-01-01", tz="UTC") + + +@pytest.mark.parametrize("notna_f", [notna, notnull]) +def test_notna_notnull(notna_f): + assert notna_f(1.0) + assert not notna_f(None) + assert not notna_f(np.nan) + + msg = "use_inf_as_na option is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + with cf.option_context("mode.use_inf_as_na", False): + assert notna_f(np.inf) + assert notna_f(-np.inf) + + arr = np.array([1.5, np.inf, 3.5, -np.inf]) + result = notna_f(arr) + assert result.all() + + with tm.assert_produces_warning(FutureWarning, match=msg): + with cf.option_context("mode.use_inf_as_na", True): + assert not notna_f(np.inf) + assert not notna_f(-np.inf) + + arr = np.array([1.5, np.inf, 3.5, -np.inf]) + result = notna_f(arr) + assert result.sum() == 2 + + +@pytest.mark.parametrize("null_func", [notna, notnull, isna, isnull]) +@pytest.mark.parametrize( + "ser", + [ + Series( + [str(i) for i in range(5)], + index=Index([str(i) for i in range(5)], dtype=object), + dtype=object, + ), + Series(range(5), date_range("2020-01-01", periods=5)), + Series(range(5), period_range("2020-01-01", periods=5)), + ], +) +def test_null_check_is_series(null_func, ser): + msg = "use_inf_as_na option is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + with cf.option_context("mode.use_inf_as_na", False): + assert isinstance(null_func(ser), Series) + + +class TestIsNA: + def test_0d_array(self): + assert isna(np.array(np.nan)) + assert not isna(np.array(0.0)) + assert not isna(np.array(0)) + # test object dtype + assert isna(np.array(np.nan, dtype=object)) + assert not isna(np.array(0.0, dtype=object)) + assert not isna(np.array(0, dtype=object)) + + @pytest.mark.parametrize("shape", [(4, 0), (4,)]) + def test_empty_object(self, shape): + arr = np.empty(shape=shape, dtype=object) + result = isna(arr) + expected = np.ones(shape=shape, dtype=bool) + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize("isna_f", [isna, isnull]) + def test_isna_isnull(self, isna_f): + assert not isna_f(1.0) + assert isna_f(None) + assert isna_f(np.nan) + assert float("nan") + assert not isna_f(np.inf) + assert not isna_f(-np.inf) + + # type + assert not isna_f(type(Series(dtype=object))) + assert not isna_f(type(Series(dtype=np.float64))) + assert not isna_f(type(pd.DataFrame())) + + @pytest.mark.parametrize("isna_f", [isna, isnull]) + @pytest.mark.parametrize( + "data", + [ + np.arange(4, dtype=float), + [0.0, 1.0, 0.0, 1.0], + Series(list("abcd")), + date_range("2020-01-01", periods=4), + ], + ) + @pytest.mark.parametrize( + "index", + [ + date_range("2020-01-01", periods=4), + range(4), + period_range("2020-01-01", periods=4), + ], + ) + def test_isna_isnull_frame(self, isna_f, data, index): + # frame + df = pd.DataFrame(data, index=index) + result = isna_f(df) + expected = df.apply(isna_f) + tm.assert_frame_equal(result, expected) + + def test_isna_lists(self): + result = isna([[False]]) + exp = np.array([[False]]) + tm.assert_numpy_array_equal(result, exp) + + result = isna([[1], [2]]) + exp = np.array([[False], [False]]) + tm.assert_numpy_array_equal(result, exp) + + # list of strings / unicode + result = isna(["foo", "bar"]) + exp = np.array([False, False]) + tm.assert_numpy_array_equal(result, exp) + + result = isna(["foo", "bar"]) + exp = np.array([False, False]) + tm.assert_numpy_array_equal(result, exp) + + # GH20675 + result = isna([np.nan, "world"]) + exp = np.array([True, False]) + tm.assert_numpy_array_equal(result, exp) + + def test_isna_nat(self): + result = isna([NaT]) + exp = np.array([True]) + tm.assert_numpy_array_equal(result, exp) + + result = isna(np.array([NaT], dtype=object)) + exp = np.array([True]) + tm.assert_numpy_array_equal(result, exp) + + def test_isna_numpy_nat(self): + arr = np.array( + [ + NaT, + np.datetime64("NaT"), + np.timedelta64("NaT"), + np.datetime64("NaT", "s"), + ] + ) + result = isna(arr) + expected = np.array([True] * 4) + tm.assert_numpy_array_equal(result, expected) + + def test_isna_datetime(self): + assert not isna(datetime.now()) + assert notna(datetime.now()) + + idx = date_range("1/1/1990", periods=20) + exp = np.ones(len(idx), dtype=bool) + tm.assert_numpy_array_equal(notna(idx), exp) + + idx = np.asarray(idx) + idx[0] = iNaT + idx = DatetimeIndex(idx) + mask = isna(idx) + assert mask[0] + exp = np.array([True] + [False] * (len(idx) - 1), dtype=bool) + tm.assert_numpy_array_equal(mask, exp) + + # GH 9129 + pidx = idx.to_period(freq="M") + mask = isna(pidx) + assert mask[0] + exp = np.array([True] + [False] * (len(idx) - 1), dtype=bool) + tm.assert_numpy_array_equal(mask, exp) + + mask = isna(pidx[1:]) + exp = np.zeros(len(mask), dtype=bool) + tm.assert_numpy_array_equal(mask, exp) + + def test_isna_old_datetimelike(self): + # isna_old should work for dt64tz, td64, and period, not just tznaive + dti = date_range("2016-01-01", periods=3) + dta = dti._data + dta[-1] = NaT + expected = np.array([False, False, True], dtype=bool) + + objs = [dta, dta.tz_localize("US/Eastern"), dta - dta, dta.to_period("D")] + + for obj in objs: + msg = "use_inf_as_na option is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + with cf.option_context("mode.use_inf_as_na", True): + result = isna(obj) + + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize( + "value, expected", + [ + (np.complex128(np.nan), True), + (np.float64(1), False), + (np.array([1, 1 + 0j, np.nan, 3]), np.array([False, False, True, False])), + ( + np.array([1, 1 + 0j, np.nan, 3], dtype=object), + np.array([False, False, True, False]), + ), + ( + np.array([1, 1 + 0j, np.nan, 3]).astype(object), + np.array([False, False, True, False]), + ), + ], + ) + def test_complex(self, value, expected): + result = isna(value) + if is_scalar(result): + assert result is expected + else: + tm.assert_numpy_array_equal(result, expected) + + def test_datetime_other_units(self): + idx = DatetimeIndex(["2011-01-01", "NaT", "2011-01-02"]) + exp = np.array([False, True, False]) + tm.assert_numpy_array_equal(isna(idx), exp) + tm.assert_numpy_array_equal(notna(idx), ~exp) + tm.assert_numpy_array_equal(isna(idx.values), exp) + tm.assert_numpy_array_equal(notna(idx.values), ~exp) + + @pytest.mark.parametrize( + "dtype", + [ + "datetime64[D]", + "datetime64[h]", + "datetime64[m]", + "datetime64[s]", + "datetime64[ms]", + "datetime64[us]", + "datetime64[ns]", + ], + ) + def test_datetime_other_units_astype(self, dtype): + idx = DatetimeIndex(["2011-01-01", "NaT", "2011-01-02"]) + values = idx.values.astype(dtype) + + exp = np.array([False, True, False]) + tm.assert_numpy_array_equal(isna(values), exp) + tm.assert_numpy_array_equal(notna(values), ~exp) + + exp = Series([False, True, False]) + s = Series(values) + tm.assert_series_equal(isna(s), exp) + tm.assert_series_equal(notna(s), ~exp) + s = Series(values, dtype=object) + tm.assert_series_equal(isna(s), exp) + tm.assert_series_equal(notna(s), ~exp) + + def test_timedelta_other_units(self): + idx = TimedeltaIndex(["1 days", "NaT", "2 days"]) + exp = np.array([False, True, False]) + tm.assert_numpy_array_equal(isna(idx), exp) + tm.assert_numpy_array_equal(notna(idx), ~exp) + tm.assert_numpy_array_equal(isna(idx.values), exp) + tm.assert_numpy_array_equal(notna(idx.values), ~exp) + + @pytest.mark.parametrize( + "dtype", + [ + "timedelta64[D]", + "timedelta64[h]", + "timedelta64[m]", + "timedelta64[s]", + "timedelta64[ms]", + "timedelta64[us]", + "timedelta64[ns]", + ], + ) + def test_timedelta_other_units_dtype(self, dtype): + idx = TimedeltaIndex(["1 days", "NaT", "2 days"]) + values = idx.values.astype(dtype) + + exp = np.array([False, True, False]) + tm.assert_numpy_array_equal(isna(values), exp) + tm.assert_numpy_array_equal(notna(values), ~exp) + + exp = Series([False, True, False]) + s = Series(values) + tm.assert_series_equal(isna(s), exp) + tm.assert_series_equal(notna(s), ~exp) + s = Series(values, dtype=object) + tm.assert_series_equal(isna(s), exp) + tm.assert_series_equal(notna(s), ~exp) + + def test_period(self): + idx = pd.PeriodIndex(["2011-01", "NaT", "2012-01"], freq="M") + exp = np.array([False, True, False]) + tm.assert_numpy_array_equal(isna(idx), exp) + tm.assert_numpy_array_equal(notna(idx), ~exp) + + exp = Series([False, True, False]) + s = Series(idx) + tm.assert_series_equal(isna(s), exp) + tm.assert_series_equal(notna(s), ~exp) + s = Series(idx, dtype=object) + tm.assert_series_equal(isna(s), exp) + tm.assert_series_equal(notna(s), ~exp) + + def test_decimal(self): + # scalars GH#23530 + a = Decimal(1.0) + assert isna(a) is False + assert notna(a) is True + + b = Decimal("NaN") + assert isna(b) is True + assert notna(b) is False + + # array + arr = np.array([a, b]) + expected = np.array([False, True]) + result = isna(arr) + tm.assert_numpy_array_equal(result, expected) + + result = notna(arr) + tm.assert_numpy_array_equal(result, ~expected) + + # series + ser = Series(arr) + expected = Series(expected) + result = isna(ser) + tm.assert_series_equal(result, expected) + + result = notna(ser) + tm.assert_series_equal(result, ~expected) + + # index + idx = Index(arr) + expected = np.array([False, True]) + result = isna(idx) + tm.assert_numpy_array_equal(result, expected) + + result = notna(idx) + tm.assert_numpy_array_equal(result, ~expected) + + +@pytest.mark.parametrize("dtype_equal", [True, False]) +def test_array_equivalent(dtype_equal): + assert array_equivalent( + np.array([np.nan, np.nan]), np.array([np.nan, np.nan]), dtype_equal=dtype_equal + ) + assert array_equivalent( + np.array([np.nan, 1, np.nan]), + np.array([np.nan, 1, np.nan]), + dtype_equal=dtype_equal, + ) + assert array_equivalent( + np.array([np.nan, None], dtype="object"), + np.array([np.nan, None], dtype="object"), + dtype_equal=dtype_equal, + ) + # Check the handling of nested arrays in array_equivalent_object + assert array_equivalent( + np.array([np.array([np.nan, None], dtype="object"), None], dtype="object"), + np.array([np.array([np.nan, None], dtype="object"), None], dtype="object"), + dtype_equal=dtype_equal, + ) + assert array_equivalent( + np.array([np.nan, 1 + 1j], dtype="complex"), + np.array([np.nan, 1 + 1j], dtype="complex"), + dtype_equal=dtype_equal, + ) + assert not array_equivalent( + np.array([np.nan, 1 + 1j], dtype="complex"), + np.array([np.nan, 1 + 2j], dtype="complex"), + dtype_equal=dtype_equal, + ) + assert not array_equivalent( + np.array([np.nan, 1, np.nan]), + np.array([np.nan, 2, np.nan]), + dtype_equal=dtype_equal, + ) + assert not array_equivalent( + np.array(["a", "b", "c", "d"]), np.array(["e", "e"]), dtype_equal=dtype_equal + ) + assert array_equivalent( + Index([0, np.nan]), Index([0, np.nan]), dtype_equal=dtype_equal + ) + assert not array_equivalent( + Index([0, np.nan]), Index([1, np.nan]), dtype_equal=dtype_equal + ) + + +@pytest.mark.parametrize("dtype_equal", [True, False]) +def test_array_equivalent_tdi(dtype_equal): + assert array_equivalent( + TimedeltaIndex([0, np.nan]), + TimedeltaIndex([0, np.nan]), + dtype_equal=dtype_equal, + ) + assert not array_equivalent( + TimedeltaIndex([0, np.nan]), + TimedeltaIndex([1, np.nan]), + dtype_equal=dtype_equal, + ) + + +@pytest.mark.parametrize("dtype_equal", [True, False]) +def test_array_equivalent_dti(dtype_equal): + assert array_equivalent( + DatetimeIndex([0, np.nan]), DatetimeIndex([0, np.nan]), dtype_equal=dtype_equal + ) + assert not array_equivalent( + DatetimeIndex([0, np.nan]), DatetimeIndex([1, np.nan]), dtype_equal=dtype_equal + ) + + dti1 = DatetimeIndex([0, np.nan], tz="US/Eastern") + dti2 = DatetimeIndex([0, np.nan], tz="CET") + dti3 = DatetimeIndex([1, np.nan], tz="US/Eastern") + + assert array_equivalent( + dti1, + dti1, + dtype_equal=dtype_equal, + ) + assert not array_equivalent( + dti1, + dti3, + dtype_equal=dtype_equal, + ) + # The rest are not dtype_equal + assert not array_equivalent(DatetimeIndex([0, np.nan]), dti1) + assert array_equivalent( + dti2, + dti1, + ) + + assert not array_equivalent(DatetimeIndex([0, np.nan]), TimedeltaIndex([0, np.nan])) + + +@pytest.mark.parametrize( + "val", [1, 1.1, 1 + 1j, True, "abc", [1, 2], (1, 2), {1, 2}, {"a": 1}, None] +) +def test_array_equivalent_series(val): + arr = np.array([1, 2]) + msg = "elementwise comparison failed" + cm = ( + # stacklevel is chosen to make sense when called from .equals + tm.assert_produces_warning(FutureWarning, match=msg, check_stacklevel=False) + if isinstance(val, str) and not np_version_gte1p25 + else nullcontext() + ) + with cm: + assert not array_equivalent(Series([arr, arr]), Series([arr, val])) + + +def test_array_equivalent_array_mismatched_shape(): + # to trigger the motivating bug, the first N elements of the arrays need + # to match + first = np.array([1, 2, 3]) + second = np.array([1, 2]) + + left = Series([first, "a"], dtype=object) + right = Series([second, "a"], dtype=object) + assert not array_equivalent(left, right) + + +def test_array_equivalent_array_mismatched_dtype(): + # same shape, different dtype can still be equivalent + first = np.array([1, 2], dtype=np.float64) + second = np.array([1, 2]) + + left = Series([first, "a"], dtype=object) + right = Series([second, "a"], dtype=object) + assert array_equivalent(left, right) + + +def test_array_equivalent_different_dtype_but_equal(): + # Unclear if this is exposed anywhere in the public-facing API + assert array_equivalent(np.array([1, 2]), np.array([1.0, 2.0])) + + +@pytest.mark.parametrize( + "lvalue, rvalue", + [ + # There are 3 variants for each of lvalue and rvalue. We include all + # three for the tz-naive `now` and exclude the datetim64 variant + # for utcnow because it drops tzinfo. + (fix_now, fix_utcnow), + (fix_now.to_datetime64(), fix_utcnow), + (fix_now.to_pydatetime(), fix_utcnow), + (fix_now, fix_utcnow), + (fix_now.to_datetime64(), fix_utcnow.to_pydatetime()), + (fix_now.to_pydatetime(), fix_utcnow.to_pydatetime()), + ], +) +def test_array_equivalent_tzawareness(lvalue, rvalue): + # we shouldn't raise if comparing tzaware and tznaive datetimes + left = np.array([lvalue], dtype=object) + right = np.array([rvalue], dtype=object) + + assert not array_equivalent(left, right, strict_nan=True) + assert not array_equivalent(left, right, strict_nan=False) + + +def test_array_equivalent_compat(): + # see gh-13388 + m = np.array([(1, 2), (3, 4)], dtype=[("a", int), ("b", float)]) + n = np.array([(1, 2), (3, 4)], dtype=[("a", int), ("b", float)]) + assert array_equivalent(m, n, strict_nan=True) + assert array_equivalent(m, n, strict_nan=False) + + m = np.array([(1, 2), (3, 4)], dtype=[("a", int), ("b", float)]) + n = np.array([(1, 2), (4, 3)], dtype=[("a", int), ("b", float)]) + assert not array_equivalent(m, n, strict_nan=True) + assert not array_equivalent(m, n, strict_nan=False) + + m = np.array([(1, 2), (3, 4)], dtype=[("a", int), ("b", float)]) + n = np.array([(1, 2), (3, 4)], dtype=[("b", int), ("a", float)]) + assert not array_equivalent(m, n, strict_nan=True) + assert not array_equivalent(m, n, strict_nan=False) + + +@pytest.mark.parametrize("dtype", ["O", "S", "U"]) +def test_array_equivalent_str(dtype): + assert array_equivalent( + np.array(["A", "B"], dtype=dtype), np.array(["A", "B"], dtype=dtype) + ) + assert not array_equivalent( + np.array(["A", "B"], dtype=dtype), np.array(["A", "X"], dtype=dtype) + ) + + +@pytest.mark.parametrize("strict_nan", [True, False]) +def test_array_equivalent_nested(strict_nan): + # reached in groupby aggregations, make sure we use np.any when checking + # if the comparison is truthy + left = np.array([np.array([50, 70, 90]), np.array([20, 30])], dtype=object) + right = np.array([np.array([50, 70, 90]), np.array([20, 30])], dtype=object) + + assert array_equivalent(left, right, strict_nan=strict_nan) + assert not array_equivalent(left, right[::-1], strict_nan=strict_nan) + + left = np.empty(2, dtype=object) + left[:] = [np.array([50, 70, 90]), np.array([20, 30, 40])] + right = np.empty(2, dtype=object) + right[:] = [np.array([50, 70, 90]), np.array([20, 30, 40])] + assert array_equivalent(left, right, strict_nan=strict_nan) + assert not array_equivalent(left, right[::-1], strict_nan=strict_nan) + + left = np.array([np.array([50, 50, 50]), np.array([40, 40])], dtype=object) + right = np.array([50, 40]) + assert not array_equivalent(left, right, strict_nan=strict_nan) + + +@pytest.mark.filterwarnings("ignore:elementwise comparison failed:DeprecationWarning") +@pytest.mark.parametrize("strict_nan", [True, False]) +def test_array_equivalent_nested2(strict_nan): + # more than one level of nesting + left = np.array( + [ + np.array([np.array([50, 70]), np.array([90])], dtype=object), + np.array([np.array([20, 30])], dtype=object), + ], + dtype=object, + ) + right = np.array( + [ + np.array([np.array([50, 70]), np.array([90])], dtype=object), + np.array([np.array([20, 30])], dtype=object), + ], + dtype=object, + ) + assert array_equivalent(left, right, strict_nan=strict_nan) + assert not array_equivalent(left, right[::-1], strict_nan=strict_nan) + + left = np.array([np.array([np.array([50, 50, 50])], dtype=object)], dtype=object) + right = np.array([50]) + assert not array_equivalent(left, right, strict_nan=strict_nan) + + +@pytest.mark.parametrize("strict_nan", [True, False]) +def test_array_equivalent_nested_list(strict_nan): + left = np.array([[50, 70, 90], [20, 30]], dtype=object) + right = np.array([[50, 70, 90], [20, 30]], dtype=object) + + assert array_equivalent(left, right, strict_nan=strict_nan) + assert not array_equivalent(left, right[::-1], strict_nan=strict_nan) + + left = np.array([[50, 50, 50], [40, 40]], dtype=object) + right = np.array([50, 40]) + assert not array_equivalent(left, right, strict_nan=strict_nan) + + +@pytest.mark.filterwarnings("ignore:elementwise comparison failed:DeprecationWarning") +@pytest.mark.xfail(reason="failing") +@pytest.mark.parametrize("strict_nan", [True, False]) +def test_array_equivalent_nested_mixed_list(strict_nan): + # mixed arrays / lists in left and right + # https://github.com/pandas-dev/pandas/issues/50360 + left = np.array([np.array([1, 2, 3]), np.array([4, 5])], dtype=object) + right = np.array([[1, 2, 3], [4, 5]], dtype=object) + + assert array_equivalent(left, right, strict_nan=strict_nan) + assert not array_equivalent(left, right[::-1], strict_nan=strict_nan) + + # multiple levels of nesting + left = np.array( + [ + np.array([np.array([1, 2, 3]), np.array([4, 5])], dtype=object), + np.array([np.array([6]), np.array([7, 8]), np.array([9])], dtype=object), + ], + dtype=object, + ) + right = np.array([[[1, 2, 3], [4, 5]], [[6], [7, 8], [9]]], dtype=object) + assert array_equivalent(left, right, strict_nan=strict_nan) + assert not array_equivalent(left, right[::-1], strict_nan=strict_nan) + + # same-length lists + subarr = np.empty(2, dtype=object) + subarr[:] = [ + np.array([None, "b"], dtype=object), + np.array(["c", "d"], dtype=object), + ] + left = np.array([subarr, None], dtype=object) + right = np.array([[[None, "b"], ["c", "d"]], None], dtype=object) + assert array_equivalent(left, right, strict_nan=strict_nan) + assert not array_equivalent(left, right[::-1], strict_nan=strict_nan) + + +@pytest.mark.xfail(reason="failing") +@pytest.mark.parametrize("strict_nan", [True, False]) +def test_array_equivalent_nested_dicts(strict_nan): + left = np.array([{"f1": 1, "f2": np.array(["a", "b"], dtype=object)}], dtype=object) + right = np.array( + [{"f1": 1, "f2": np.array(["a", "b"], dtype=object)}], dtype=object + ) + assert array_equivalent(left, right, strict_nan=strict_nan) + assert not array_equivalent(left, right[::-1], strict_nan=strict_nan) + + right2 = np.array([{"f1": 1, "f2": ["a", "b"]}], dtype=object) + assert array_equivalent(left, right2, strict_nan=strict_nan) + assert not array_equivalent(left, right2[::-1], strict_nan=strict_nan) + + +def test_array_equivalent_index_with_tuples(): + # GH#48446 + idx1 = Index(np.array([(pd.NA, 4), (1, 1)], dtype="object")) + idx2 = Index(np.array([(1, 1), (pd.NA, 4)], dtype="object")) + assert not array_equivalent(idx1, idx2) + assert not idx1.equals(idx2) + assert not array_equivalent(idx2, idx1) + assert not idx2.equals(idx1) + + idx1 = Index(np.array([(4, pd.NA), (1, 1)], dtype="object")) + idx2 = Index(np.array([(1, 1), (4, pd.NA)], dtype="object")) + assert not array_equivalent(idx1, idx2) + assert not idx1.equals(idx2) + assert not array_equivalent(idx2, idx1) + assert not idx2.equals(idx1) + + +@pytest.mark.parametrize( + "dtype, na_value", + [ + # Datetime-like + (np.dtype("M8[ns]"), np.datetime64("NaT", "ns")), + (np.dtype("m8[ns]"), np.timedelta64("NaT", "ns")), + (DatetimeTZDtype.construct_from_string("datetime64[ns, US/Eastern]"), NaT), + (PeriodDtype("M"), NaT), + # Integer + ("u1", 0), + ("u2", 0), + ("u4", 0), + ("u8", 0), + ("i1", 0), + ("i2", 0), + ("i4", 0), + ("i8", 0), + # Bool + ("bool", False), + # Float + ("f2", np.nan), + ("f4", np.nan), + ("f8", np.nan), + # Object + ("O", np.nan), + # Interval + (IntervalDtype(), np.nan), + ], +) +def test_na_value_for_dtype(dtype, na_value): + result = na_value_for_dtype(pandas_dtype(dtype)) + # identify check doesn't work for datetime64/timedelta64("NaT") bc they + # are not singletons + assert result is na_value or ( + isna(result) and isna(na_value) and type(result) is type(na_value) + ) + + +class TestNAObj: + def _check_behavior(self, arr, expected): + result = libmissing.isnaobj(arr) + tm.assert_numpy_array_equal(result, expected) + result = libmissing.isnaobj(arr, inf_as_na=True) + tm.assert_numpy_array_equal(result, expected) + + arr = np.atleast_2d(arr) + expected = np.atleast_2d(expected) + + result = libmissing.isnaobj(arr) + tm.assert_numpy_array_equal(result, expected) + result = libmissing.isnaobj(arr, inf_as_na=True) + tm.assert_numpy_array_equal(result, expected) + + # Test fortran order + arr = arr.copy(order="F") + result = libmissing.isnaobj(arr) + tm.assert_numpy_array_equal(result, expected) + result = libmissing.isnaobj(arr, inf_as_na=True) + tm.assert_numpy_array_equal(result, expected) + + def test_basic(self): + arr = np.array([1, None, "foo", -5.1, NaT, np.nan]) + expected = np.array([False, True, False, False, True, True]) + + self._check_behavior(arr, expected) + + def test_non_obj_dtype(self): + arr = np.array([1, 3, np.nan, 5], dtype=float) + expected = np.array([False, False, True, False]) + + self._check_behavior(arr, expected) + + def test_empty_arr(self): + arr = np.array([]) + expected = np.array([], dtype=bool) + + self._check_behavior(arr, expected) + + def test_empty_str_inp(self): + arr = np.array([""]) # empty but not na + expected = np.array([False]) + + self._check_behavior(arr, expected) + + def test_empty_like(self): + # see gh-13717: no segfaults! + arr = np.empty_like([None]) + expected = np.array([True]) + + self._check_behavior(arr, expected) + + +m8_units = ["as", "ps", "ns", "us", "ms", "s", "m", "h", "D", "W", "M", "Y"] + +na_vals = ( + [ + None, + NaT, + float("NaN"), + complex("NaN"), + np.nan, + np.float64("NaN"), + np.float32("NaN"), + np.complex64(np.nan), + np.complex128(np.nan), + np.datetime64("NaT"), + np.timedelta64("NaT"), + ] + + [np.datetime64("NaT", unit) for unit in m8_units] + + [np.timedelta64("NaT", unit) for unit in m8_units] +) + +inf_vals = [ + float("inf"), + float("-inf"), + complex("inf"), + complex("-inf"), + np.inf, + -np.inf, +] + +int_na_vals = [ + # Values that match iNaT, which we treat as null in specific cases + np.int64(NaT._value), + int(NaT._value), +] + +sometimes_na_vals = [Decimal("NaN")] + +never_na_vals = [ + # float/complex values that when viewed as int64 match iNaT + -0.0, + np.float64("-0.0"), + -0j, + np.complex64(-0j), +] + + +class TestLibMissing: + @pytest.mark.parametrize("func", [libmissing.checknull, isna]) + @pytest.mark.parametrize( + "value", na_vals + sometimes_na_vals # type: ignore[operator] + ) + def test_checknull_na_vals(self, func, value): + assert func(value) + + @pytest.mark.parametrize("func", [libmissing.checknull, isna]) + @pytest.mark.parametrize("value", inf_vals) + def test_checknull_inf_vals(self, func, value): + assert not func(value) + + @pytest.mark.parametrize("func", [libmissing.checknull, isna]) + @pytest.mark.parametrize("value", int_na_vals) + def test_checknull_intna_vals(self, func, value): + assert not func(value) + + @pytest.mark.parametrize("func", [libmissing.checknull, isna]) + @pytest.mark.parametrize("value", never_na_vals) + def test_checknull_never_na_vals(self, func, value): + assert not func(value) + + @pytest.mark.parametrize( + "value", na_vals + sometimes_na_vals # type: ignore[operator] + ) + def test_checknull_old_na_vals(self, value): + assert libmissing.checknull(value, inf_as_na=True) + + @pytest.mark.parametrize("value", inf_vals) + def test_checknull_old_inf_vals(self, value): + assert libmissing.checknull(value, inf_as_na=True) + + @pytest.mark.parametrize("value", int_na_vals) + def test_checknull_old_intna_vals(self, value): + assert not libmissing.checknull(value, inf_as_na=True) + + @pytest.mark.parametrize("value", int_na_vals) + def test_checknull_old_never_na_vals(self, value): + assert not libmissing.checknull(value, inf_as_na=True) + + def test_is_matching_na(self, nulls_fixture, nulls_fixture2): + left = nulls_fixture + right = nulls_fixture2 + + assert libmissing.is_matching_na(left, left) + + if left is right: + assert libmissing.is_matching_na(left, right) + elif is_float(left) and is_float(right): + # np.nan vs float("NaN") we consider as matching + assert libmissing.is_matching_na(left, right) + elif type(left) is type(right): + # e.g. both Decimal("NaN") + assert libmissing.is_matching_na(left, right) + else: + assert not libmissing.is_matching_na(left, right) + + def test_is_matching_na_nan_matches_none(self): + assert not libmissing.is_matching_na(None, np.nan) + assert not libmissing.is_matching_na(np.nan, None) + + assert libmissing.is_matching_na(None, np.nan, nan_matches_none=True) + assert libmissing.is_matching_na(np.nan, None, nan_matches_none=True) + + +class TestIsValidNAForDtype: + def test_is_valid_na_for_dtype_interval(self): + dtype = IntervalDtype("int64", "left") + assert not is_valid_na_for_dtype(NaT, dtype) + + dtype = IntervalDtype("datetime64[ns]", "both") + assert not is_valid_na_for_dtype(NaT, dtype) + + def test_is_valid_na_for_dtype_categorical(self): + dtype = CategoricalDtype(categories=[0, 1, 2]) + assert is_valid_na_for_dtype(np.nan, dtype) + + assert not is_valid_na_for_dtype(NaT, dtype) + assert not is_valid_na_for_dtype(np.datetime64("NaT", "ns"), dtype) + assert not is_valid_na_for_dtype(np.timedelta64("NaT", "ns"), dtype) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/array_with_attr/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/array_with_attr/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..49da6af024a31726743815ba1e36d66c03daafe5 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/array_with_attr/__init__.py @@ -0,0 +1,6 @@ +from pandas.tests.extension.array_with_attr.array import ( + FloatAttrArray, + FloatAttrDtype, +) + +__all__ = ["FloatAttrArray", "FloatAttrDtype"] diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/array_with_attr/array.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/array_with_attr/array.py new file mode 100644 index 0000000000000000000000000000000000000000..2789d51ec2ce3096c64b41af90b5a416ceef9f5b --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/array_with_attr/array.py @@ -0,0 +1,89 @@ +""" +Test extension array that has custom attribute information (not stored on the dtype). + +""" +from __future__ import annotations + +import numbers +from typing import TYPE_CHECKING + +import numpy as np + +from pandas.core.dtypes.base import ExtensionDtype + +import pandas as pd +from pandas.core.arrays import ExtensionArray + +if TYPE_CHECKING: + from pandas._typing import type_t + + +class FloatAttrDtype(ExtensionDtype): + type = float + name = "float_attr" + na_value = np.nan + + @classmethod + def construct_array_type(cls) -> type_t[FloatAttrArray]: + """ + Return the array type associated with this dtype. + + Returns + ------- + type + """ + return FloatAttrArray + + +class FloatAttrArray(ExtensionArray): + dtype = FloatAttrDtype() + __array_priority__ = 1000 + + def __init__(self, values, attr=None) -> None: + if not isinstance(values, np.ndarray): + raise TypeError("Need to pass a numpy array of float64 dtype as values") + if not values.dtype == "float64": + raise TypeError("Need to pass a numpy array of float64 dtype as values") + self.data = values + self.attr = attr + + @classmethod + def _from_sequence(cls, scalars, *, dtype=None, copy=False): + if not copy: + data = np.asarray(scalars, dtype="float64") + else: + data = np.array(scalars, dtype="float64", copy=copy) + return cls(data) + + def __getitem__(self, item): + if isinstance(item, numbers.Integral): + return self.data[item] + else: + # slice, list-like, mask + item = pd.api.indexers.check_array_indexer(self, item) + return type(self)(self.data[item], self.attr) + + def __len__(self) -> int: + return len(self.data) + + def isna(self): + return np.isnan(self.data) + + def take(self, indexer, allow_fill=False, fill_value=None): + from pandas.api.extensions import take + + data = self.data + if allow_fill and fill_value is None: + fill_value = self.dtype.na_value + + result = take(data, indexer, fill_value=fill_value, allow_fill=allow_fill) + return type(self)(result, self.attr) + + def copy(self): + return type(self)(self.data.copy(), self.attr) + + @classmethod + def _concat_same_type(cls, to_concat): + data = np.concatenate([x.data for x in to_concat]) + attr = to_concat[0].attr if len(to_concat) else None + return cls(data, attr) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/array_with_attr/test_array_with_attr.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/array_with_attr/test_array_with_attr.py new file mode 100644 index 0000000000000000000000000000000000000000..3735fe40a0d67784b3603a177b6694e56e26d479 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/array_with_attr/test_array_with_attr.py @@ -0,0 +1,33 @@ +import numpy as np + +import pandas as pd +import pandas._testing as tm +from pandas.tests.extension.array_with_attr import FloatAttrArray + + +def test_concat_with_all_na(): + # https://github.com/pandas-dev/pandas/pull/47762 + # ensure that attribute of the column array is preserved (when it gets + # preserved in reindexing the array) during merge/concat + arr = FloatAttrArray(np.array([np.nan, np.nan], dtype="float64"), attr="test") + + df1 = pd.DataFrame({"col": arr, "key": [0, 1]}) + df2 = pd.DataFrame({"key": [0, 1], "col2": [1, 2]}) + result = pd.merge(df1, df2, on="key") + expected = pd.DataFrame({"col": arr, "key": [0, 1], "col2": [1, 2]}) + tm.assert_frame_equal(result, expected) + assert result["col"].array.attr == "test" + + df1 = pd.DataFrame({"col": arr, "key": [0, 1]}) + df2 = pd.DataFrame({"key": [0, 2], "col2": [1, 2]}) + result = pd.merge(df1, df2, on="key") + expected = pd.DataFrame({"col": arr.take([0]), "key": [0], "col2": [1]}) + tm.assert_frame_equal(result, expected) + assert result["col"].array.attr == "test" + + result = pd.concat([df1.set_index("key"), df2.set_index("key")], axis=1) + expected = pd.DataFrame( + {"col": arr.take([0, 1, -1]), "col2": [1, np.nan, 2], "key": [0, 1, 2]} + ).set_index("key") + tm.assert_frame_equal(result, expected) + assert result["col"].array.attr == "test" diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..6efaa95aef1b51c33df668db870eaa8741010a59 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/__init__.py @@ -0,0 +1,131 @@ +""" +Base test suite for extension arrays. + +These tests are intended for third-party libraries to subclass to validate +that their extension arrays and dtypes satisfy the interface. Moving or +renaming the tests should not be done lightly. + +Libraries are expected to implement a few pytest fixtures to provide data +for the tests. The fixtures may be located in either + +* The same module as your test class. +* A ``conftest.py`` in the same directory as your test class. + +The full list of fixtures may be found in the ``conftest.py`` next to this +file. + +.. code-block:: python + + import pytest + from pandas.tests.extension.base import BaseDtypeTests + + + @pytest.fixture + def dtype(): + return MyDtype() + + + class TestMyDtype(BaseDtypeTests): + pass + + +Your class ``TestDtype`` will inherit all the tests defined on +``BaseDtypeTests``. pytest's fixture discover will supply your ``dtype`` +wherever the test requires it. You're free to implement additional tests. + +""" +from pandas.tests.extension.base.accumulate import BaseAccumulateTests +from pandas.tests.extension.base.casting import BaseCastingTests +from pandas.tests.extension.base.constructors import BaseConstructorsTests +from pandas.tests.extension.base.dim2 import ( # noqa: F401 + Dim2CompatTests, + NDArrayBacked2DTests, +) +from pandas.tests.extension.base.dtype import BaseDtypeTests +from pandas.tests.extension.base.getitem import BaseGetitemTests +from pandas.tests.extension.base.groupby import BaseGroupbyTests +from pandas.tests.extension.base.index import BaseIndexTests +from pandas.tests.extension.base.interface import BaseInterfaceTests +from pandas.tests.extension.base.io import BaseParsingTests +from pandas.tests.extension.base.methods import BaseMethodsTests +from pandas.tests.extension.base.missing import BaseMissingTests +from pandas.tests.extension.base.ops import ( # noqa: F401 + BaseArithmeticOpsTests, + BaseComparisonOpsTests, + BaseOpsUtil, + BaseUnaryOpsTests, +) +from pandas.tests.extension.base.printing import BasePrintingTests +from pandas.tests.extension.base.reduce import BaseReduceTests +from pandas.tests.extension.base.reshaping import BaseReshapingTests +from pandas.tests.extension.base.setitem import BaseSetitemTests + + +# One test class that you can inherit as an alternative to inheriting all the +# test classes above. +# Note 1) this excludes Dim2CompatTests and NDArrayBacked2DTests. +# Note 2) this uses BaseReduceTests and and _not_ BaseBooleanReduceTests, +# BaseNoReduceTests, or BaseNumericReduceTests +class ExtensionTests( + BaseAccumulateTests, + BaseCastingTests, + BaseConstructorsTests, + BaseDtypeTests, + BaseGetitemTests, + BaseGroupbyTests, + BaseIndexTests, + BaseInterfaceTests, + BaseParsingTests, + BaseMethodsTests, + BaseMissingTests, + BaseArithmeticOpsTests, + BaseComparisonOpsTests, + BaseUnaryOpsTests, + BasePrintingTests, + BaseReduceTests, + BaseReshapingTests, + BaseSetitemTests, + Dim2CompatTests, +): + pass + + +def __getattr__(name: str): + import warnings + + if name == "BaseNoReduceTests": + warnings.warn( + "BaseNoReduceTests is deprecated and will be removed in a " + "future version. Use BaseReduceTests and override " + "`_supports_reduction` instead.", + FutureWarning, + ) + from pandas.tests.extension.base.reduce import BaseNoReduceTests + + return BaseNoReduceTests + + elif name == "BaseNumericReduceTests": + warnings.warn( + "BaseNumericReduceTests is deprecated and will be removed in a " + "future version. Use BaseReduceTests and override " + "`_supports_reduction` instead.", + FutureWarning, + ) + from pandas.tests.extension.base.reduce import BaseNumericReduceTests + + return BaseNumericReduceTests + + elif name == "BaseBooleanReduceTests": + warnings.warn( + "BaseBooleanReduceTests is deprecated and will be removed in a " + "future version. Use BaseReduceTests and override " + "`_supports_reduction` instead.", + FutureWarning, + ) + from pandas.tests.extension.base.reduce import BaseBooleanReduceTests + + return BaseBooleanReduceTests + + raise AttributeError( + f"module 'pandas.tests.extension.base' has no attribute '{name}'" + ) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/accumulate.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/accumulate.py new file mode 100644 index 0000000000000000000000000000000000000000..9a2f186c2a00bf933cf3fdbcb7a07482930846e6 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/accumulate.py @@ -0,0 +1,40 @@ +import pytest + +import pandas as pd +import pandas._testing as tm + + +class BaseAccumulateTests: + """ + Accumulation specific tests. Generally these only + make sense for numeric/boolean operations. + """ + + def _supports_accumulation(self, ser: pd.Series, op_name: str) -> bool: + # Do we expect this accumulation to be supported for this dtype? + # We default to assuming "no"; subclass authors should override here. + return False + + def check_accumulate(self, ser: pd.Series, op_name: str, skipna: bool): + try: + alt = ser.astype("float64") + except (TypeError, ValueError): + # e.g. Period can't be cast to float64 (TypeError) + # String can't be cast to float64 (ValueError) + alt = ser.astype(object) + + result = getattr(ser, op_name)(skipna=skipna) + expected = getattr(alt, op_name)(skipna=skipna) + tm.assert_series_equal(result, expected, check_dtype=False) + + @pytest.mark.parametrize("skipna", [True, False]) + def test_accumulate_series(self, data, all_numeric_accumulations, skipna): + op_name = all_numeric_accumulations + ser = pd.Series(data) + + if self._supports_accumulation(ser, op_name): + self.check_accumulate(ser, op_name, skipna) + else: + with pytest.raises((NotImplementedError, TypeError)): + # TODO: require TypeError for things that will _never_ work? + getattr(ser, op_name)(skipna=skipna) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/base.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/base.py new file mode 100644 index 0000000000000000000000000000000000000000..747ebee738c1ee5cf9bbcc858aedd55dea39b38c --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/base.py @@ -0,0 +1,2 @@ +class BaseExtensionTests: + pass diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/casting.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/casting.py new file mode 100644 index 0000000000000000000000000000000000000000..56879129c3a28e69442ff4ba6bc1e1bdbed0183d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/casting.py @@ -0,0 +1,87 @@ +import numpy as np +import pytest + +import pandas.util._test_decorators as td + +import pandas as pd +import pandas._testing as tm +from pandas.core.internals.blocks import NumpyBlock + + +class BaseCastingTests: + """Casting to and from ExtensionDtypes""" + + def test_astype_object_series(self, all_data): + ser = pd.Series(all_data, name="A") + result = ser.astype(object) + assert result.dtype == np.dtype(object) + if hasattr(result._mgr, "blocks"): + blk = result._mgr.blocks[0] + assert isinstance(blk, NumpyBlock) + assert blk.is_object + assert isinstance(result._mgr.array, np.ndarray) + assert result._mgr.array.dtype == np.dtype(object) + + def test_astype_object_frame(self, all_data): + df = pd.DataFrame({"A": all_data}) + + result = df.astype(object) + if hasattr(result._mgr, "blocks"): + blk = result._mgr.blocks[0] + assert isinstance(blk, NumpyBlock), type(blk) + assert blk.is_object + assert isinstance(result._mgr.arrays[0], np.ndarray) + assert result._mgr.arrays[0].dtype == np.dtype(object) + + # check that we can compare the dtypes + comp = result.dtypes == df.dtypes + assert not comp.any() + + def test_tolist(self, data): + result = pd.Series(data).tolist() + expected = list(data) + assert result == expected + + def test_astype_str(self, data): + result = pd.Series(data[:2]).astype(str) + expected = pd.Series([str(x) for x in data[:2]], dtype=str) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize( + "nullable_string_dtype", + [ + "string[python]", + pytest.param("string[pyarrow]", marks=td.skip_if_no("pyarrow")), + ], + ) + def test_astype_string(self, data, nullable_string_dtype): + # GH-33465, GH#45326 as of 2.0 we decode bytes instead of calling str(obj) + result = pd.Series(data[:5]).astype(nullable_string_dtype) + expected = pd.Series( + [str(x) if not isinstance(x, bytes) else x.decode() for x in data[:5]], + dtype=nullable_string_dtype, + ) + tm.assert_series_equal(result, expected) + + def test_to_numpy(self, data): + expected = np.asarray(data) + + result = data.to_numpy() + tm.assert_equal(result, expected) + + result = pd.Series(data).to_numpy() + tm.assert_equal(result, expected) + + def test_astype_empty_dataframe(self, dtype): + # https://github.com/pandas-dev/pandas/issues/33113 + df = pd.DataFrame() + result = df.astype(dtype) + tm.assert_frame_equal(result, df) + + @pytest.mark.parametrize("copy", [True, False]) + def test_astype_own_type(self, data, copy): + # ensure that astype returns the original object for equal dtype and copy=False + # https://github.com/pandas-dev/pandas/issues/28488 + result = data.astype(data.dtype, copy=copy) + assert (result is data) is (not copy) + tm.assert_extension_array_equal(result, data) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/constructors.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/constructors.py new file mode 100644 index 0000000000000000000000000000000000000000..c32a6a6a115ac992a9b85b6a35e77e4d446fbd07 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/constructors.py @@ -0,0 +1,142 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm +from pandas.api.extensions import ExtensionArray +from pandas.core.internals.blocks import EABackedBlock + + +class BaseConstructorsTests: + def test_from_sequence_from_cls(self, data): + result = type(data)._from_sequence(data, dtype=data.dtype) + tm.assert_extension_array_equal(result, data) + + data = data[:0] + result = type(data)._from_sequence(data, dtype=data.dtype) + tm.assert_extension_array_equal(result, data) + + def test_array_from_scalars(self, data): + scalars = [data[0], data[1], data[2]] + result = data._from_sequence(scalars, dtype=data.dtype) + assert isinstance(result, type(data)) + + def test_series_constructor(self, data): + result = pd.Series(data, copy=False) + assert result.dtype == data.dtype + assert len(result) == len(data) + if hasattr(result._mgr, "blocks"): + assert isinstance(result._mgr.blocks[0], EABackedBlock) + assert result._mgr.array is data + + # Series[EA] is unboxed / boxed correctly + result2 = pd.Series(result) + assert result2.dtype == data.dtype + if hasattr(result._mgr, "blocks"): + assert isinstance(result2._mgr.blocks[0], EABackedBlock) + + def test_series_constructor_no_data_with_index(self, dtype, na_value): + result = pd.Series(index=[1, 2, 3], dtype=dtype) + expected = pd.Series([na_value] * 3, index=[1, 2, 3], dtype=dtype) + tm.assert_series_equal(result, expected) + + # GH 33559 - empty index + result = pd.Series(index=[], dtype=dtype) + expected = pd.Series([], index=pd.Index([], dtype="object"), dtype=dtype) + tm.assert_series_equal(result, expected) + + def test_series_constructor_scalar_na_with_index(self, dtype, na_value): + result = pd.Series(na_value, index=[1, 2, 3], dtype=dtype) + expected = pd.Series([na_value] * 3, index=[1, 2, 3], dtype=dtype) + tm.assert_series_equal(result, expected) + + def test_series_constructor_scalar_with_index(self, data, dtype): + scalar = data[0] + result = pd.Series(scalar, index=[1, 2, 3], dtype=dtype) + expected = pd.Series([scalar] * 3, index=[1, 2, 3], dtype=dtype) + tm.assert_series_equal(result, expected) + + result = pd.Series(scalar, index=["foo"], dtype=dtype) + expected = pd.Series([scalar], index=["foo"], dtype=dtype) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("from_series", [True, False]) + def test_dataframe_constructor_from_dict(self, data, from_series): + if from_series: + data = pd.Series(data) + result = pd.DataFrame({"A": data}) + assert result.dtypes["A"] == data.dtype + assert result.shape == (len(data), 1) + if hasattr(result._mgr, "blocks"): + assert isinstance(result._mgr.blocks[0], EABackedBlock) + assert isinstance(result._mgr.arrays[0], ExtensionArray) + + def test_dataframe_from_series(self, data): + result = pd.DataFrame(pd.Series(data)) + assert result.dtypes[0] == data.dtype + assert result.shape == (len(data), 1) + if hasattr(result._mgr, "blocks"): + assert isinstance(result._mgr.blocks[0], EABackedBlock) + assert isinstance(result._mgr.arrays[0], ExtensionArray) + + def test_series_given_mismatched_index_raises(self, data): + msg = r"Length of values \(3\) does not match length of index \(5\)" + with pytest.raises(ValueError, match=msg): + pd.Series(data[:3], index=[0, 1, 2, 3, 4]) + + def test_from_dtype(self, data): + # construct from our dtype & string dtype + dtype = data.dtype + + expected = pd.Series(data) + result = pd.Series(list(data), dtype=dtype) + tm.assert_series_equal(result, expected) + + result = pd.Series(list(data), dtype=str(dtype)) + tm.assert_series_equal(result, expected) + + # gh-30280 + + expected = pd.DataFrame(data).astype(dtype) + result = pd.DataFrame(list(data), dtype=dtype) + tm.assert_frame_equal(result, expected) + + result = pd.DataFrame(list(data), dtype=str(dtype)) + tm.assert_frame_equal(result, expected) + + def test_pandas_array(self, data): + # pd.array(extension_array) should be idempotent... + result = pd.array(data) + tm.assert_extension_array_equal(result, data) + + def test_pandas_array_dtype(self, data): + # ... but specifying dtype will override idempotency + result = pd.array(data, dtype=np.dtype(object)) + expected = pd.arrays.NumpyExtensionArray(np.asarray(data, dtype=object)) + tm.assert_equal(result, expected) + + def test_construct_empty_dataframe(self, dtype): + # GH 33623 + result = pd.DataFrame(columns=["a"], dtype=dtype) + expected = pd.DataFrame( + {"a": pd.array([], dtype=dtype)}, index=pd.RangeIndex(0) + ) + tm.assert_frame_equal(result, expected) + + def test_empty(self, dtype): + cls = dtype.construct_array_type() + result = cls._empty((4,), dtype=dtype) + assert isinstance(result, cls) + assert result.dtype == dtype + assert result.shape == (4,) + + # GH#19600 method on ExtensionDtype + result2 = dtype.empty((4,)) + assert isinstance(result2, cls) + assert result2.dtype == dtype + assert result2.shape == (4,) + + result2 = dtype.empty(4) + assert isinstance(result2, cls) + assert result2.dtype == dtype + assert result2.shape == (4,) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/dim2.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/dim2.py new file mode 100644 index 0000000000000000000000000000000000000000..132cda5a94ed00e74b7f36869bfe0c789dd5ccd7 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/dim2.py @@ -0,0 +1,345 @@ +""" +Tests for 2D compatibility. +""" +import numpy as np +import pytest + +from pandas._libs.missing import is_matching_na + +from pandas.core.dtypes.common import ( + is_bool_dtype, + is_integer_dtype, +) + +import pandas as pd +import pandas._testing as tm +from pandas.core.arrays.integer import NUMPY_INT_TO_DTYPE + + +class Dim2CompatTests: + # Note: these are ONLY for ExtensionArray subclasses that support 2D arrays. + # i.e. not for pyarrow-backed EAs. + + @pytest.fixture(autouse=True) + def skip_if_doesnt_support_2d(self, dtype, request): + if not dtype._supports_2d: + node = request.node + # In cases where we are mixed in to ExtensionTests, we only want to + # skip tests that are defined in Dim2CompatTests + test_func = node._obj + if test_func.__qualname__.startswith("Dim2CompatTests"): + # TODO: is there a less hacky way of checking this? + pytest.skip(f"{dtype} does not support 2D.") + + def test_transpose(self, data): + arr2d = data.repeat(2).reshape(-1, 2) + shape = arr2d.shape + assert shape[0] != shape[-1] # otherwise the rest of the test is useless + + assert arr2d.T.shape == shape[::-1] + + def test_frame_from_2d_array(self, data): + arr2d = data.repeat(2).reshape(-1, 2) + + df = pd.DataFrame(arr2d) + expected = pd.DataFrame({0: arr2d[:, 0], 1: arr2d[:, 1]}) + tm.assert_frame_equal(df, expected) + + def test_swapaxes(self, data): + arr2d = data.repeat(2).reshape(-1, 2) + + result = arr2d.swapaxes(0, 1) + expected = arr2d.T + tm.assert_extension_array_equal(result, expected) + + def test_delete_2d(self, data): + arr2d = data.repeat(3).reshape(-1, 3) + + # axis = 0 + result = arr2d.delete(1, axis=0) + expected = data.delete(1).repeat(3).reshape(-1, 3) + tm.assert_extension_array_equal(result, expected) + + # axis = 1 + result = arr2d.delete(1, axis=1) + expected = data.repeat(2).reshape(-1, 2) + tm.assert_extension_array_equal(result, expected) + + def test_take_2d(self, data): + arr2d = data.reshape(-1, 1) + + result = arr2d.take([0, 0, -1], axis=0) + + expected = data.take([0, 0, -1]).reshape(-1, 1) + tm.assert_extension_array_equal(result, expected) + + def test_repr_2d(self, data): + # this could fail in a corner case where an element contained the name + res = repr(data.reshape(1, -1)) + assert res.count(f"<{type(data).__name__}") == 1 + + res = repr(data.reshape(-1, 1)) + assert res.count(f"<{type(data).__name__}") == 1 + + def test_reshape(self, data): + arr2d = data.reshape(-1, 1) + assert arr2d.shape == (data.size, 1) + assert len(arr2d) == len(data) + + arr2d = data.reshape((-1, 1)) + assert arr2d.shape == (data.size, 1) + assert len(arr2d) == len(data) + + with pytest.raises(ValueError): + data.reshape((data.size, 2)) + with pytest.raises(ValueError): + data.reshape(data.size, 2) + + def test_getitem_2d(self, data): + arr2d = data.reshape(1, -1) + + result = arr2d[0] + tm.assert_extension_array_equal(result, data) + + with pytest.raises(IndexError): + arr2d[1] + + with pytest.raises(IndexError): + arr2d[-2] + + result = arr2d[:] + tm.assert_extension_array_equal(result, arr2d) + + result = arr2d[:, :] + tm.assert_extension_array_equal(result, arr2d) + + result = arr2d[:, 0] + expected = data[[0]] + tm.assert_extension_array_equal(result, expected) + + # dimension-expanding getitem on 1D + result = data[:, np.newaxis] + tm.assert_extension_array_equal(result, arr2d.T) + + def test_iter_2d(self, data): + arr2d = data.reshape(1, -1) + + objs = list(iter(arr2d)) + assert len(objs) == arr2d.shape[0] + + for obj in objs: + assert isinstance(obj, type(data)) + assert obj.dtype == data.dtype + assert obj.ndim == 1 + assert len(obj) == arr2d.shape[1] + + def test_tolist_2d(self, data): + arr2d = data.reshape(1, -1) + + result = arr2d.tolist() + expected = [data.tolist()] + + assert isinstance(result, list) + assert all(isinstance(x, list) for x in result) + + assert result == expected + + def test_concat_2d(self, data): + left = type(data)._concat_same_type([data, data]).reshape(-1, 2) + right = left.copy() + + # axis=0 + result = left._concat_same_type([left, right], axis=0) + expected = data._concat_same_type([data] * 4).reshape(-1, 2) + tm.assert_extension_array_equal(result, expected) + + # axis=1 + result = left._concat_same_type([left, right], axis=1) + assert result.shape == (len(data), 4) + tm.assert_extension_array_equal(result[:, :2], left) + tm.assert_extension_array_equal(result[:, 2:], right) + + # axis > 1 -> invalid + msg = "axis 2 is out of bounds for array of dimension 2" + with pytest.raises(ValueError, match=msg): + left._concat_same_type([left, right], axis=2) + + @pytest.mark.parametrize("method", ["backfill", "pad"]) + def test_fillna_2d_method(self, data_missing, method): + # pad_or_backfill is always along axis=0 + arr = data_missing.repeat(2).reshape(2, 2) + assert arr[0].isna().all() + assert not arr[1].isna().any() + + result = arr._pad_or_backfill(method=method, limit=None) + + expected = data_missing._pad_or_backfill(method=method).repeat(2).reshape(2, 2) + tm.assert_extension_array_equal(result, expected) + + # Reverse so that backfill is not a no-op. + arr2 = arr[::-1] + assert not arr2[0].isna().any() + assert arr2[1].isna().all() + + result2 = arr2._pad_or_backfill(method=method, limit=None) + + expected2 = ( + data_missing[::-1]._pad_or_backfill(method=method).repeat(2).reshape(2, 2) + ) + tm.assert_extension_array_equal(result2, expected2) + + @pytest.mark.parametrize("method", ["mean", "median", "var", "std", "sum", "prod"]) + def test_reductions_2d_axis_none(self, data, method): + arr2d = data.reshape(1, -1) + + err_expected = None + err_result = None + try: + expected = getattr(data, method)() + except Exception as err: + # if the 1D reduction is invalid, the 2D reduction should be as well + err_expected = err + try: + result = getattr(arr2d, method)(axis=None) + except Exception as err2: + err_result = err2 + + else: + result = getattr(arr2d, method)(axis=None) + + if err_result is not None or err_expected is not None: + assert type(err_result) == type(err_expected) + return + + assert is_matching_na(result, expected) or result == expected + + @pytest.mark.parametrize("method", ["mean", "median", "var", "std", "sum", "prod"]) + @pytest.mark.parametrize("min_count", [0, 1]) + def test_reductions_2d_axis0(self, data, method, min_count): + if min_count == 1 and method not in ["sum", "prod"]: + pytest.skip(f"min_count not relevant for {method}") + + arr2d = data.reshape(1, -1) + + kwargs = {} + if method in ["std", "var"]: + # pass ddof=0 so we get all-zero std instead of all-NA std + kwargs["ddof"] = 0 + elif method in ["prod", "sum"]: + kwargs["min_count"] = min_count + + try: + result = getattr(arr2d, method)(axis=0, **kwargs) + except Exception as err: + try: + getattr(data, method)() + except Exception as err2: + assert type(err) == type(err2) + return + else: + raise AssertionError("Both reductions should raise or neither") + + def get_reduction_result_dtype(dtype): + # windows and 32bit builds will in some cases have int32/uint32 + # where other builds will have int64/uint64. + if dtype.itemsize == 8: + return dtype + elif dtype.kind in "ib": + return NUMPY_INT_TO_DTYPE[np.dtype(int)] + else: + # i.e. dtype.kind == "u" + return NUMPY_INT_TO_DTYPE[np.dtype("uint")] + + if method in ["sum", "prod"]: + # std and var are not dtype-preserving + expected = data + if data.dtype.kind in "iub": + dtype = get_reduction_result_dtype(data.dtype) + expected = data.astype(dtype) + assert dtype == expected.dtype + + if min_count == 0: + fill_value = 1 if method == "prod" else 0 + expected = expected.fillna(fill_value) + + tm.assert_extension_array_equal(result, expected) + elif method == "median": + # std and var are not dtype-preserving + expected = data + tm.assert_extension_array_equal(result, expected) + elif method in ["mean", "std", "var"]: + if is_integer_dtype(data) or is_bool_dtype(data): + data = data.astype("Float64") + if method == "mean": + tm.assert_extension_array_equal(result, data) + else: + tm.assert_extension_array_equal(result, data - data) + + @pytest.mark.parametrize("method", ["mean", "median", "var", "std", "sum", "prod"]) + def test_reductions_2d_axis1(self, data, method): + arr2d = data.reshape(1, -1) + + try: + result = getattr(arr2d, method)(axis=1) + except Exception as err: + try: + getattr(data, method)() + except Exception as err2: + assert type(err) == type(err2) + return + else: + raise AssertionError("Both reductions should raise or neither") + + # not necessarily type/dtype-preserving, so weaker assertions + assert result.shape == (1,) + expected_scalar = getattr(data, method)() + res = result[0] + assert is_matching_na(res, expected_scalar) or res == expected_scalar + + +class NDArrayBacked2DTests(Dim2CompatTests): + # More specific tests for NDArrayBackedExtensionArray subclasses + + def test_copy_order(self, data): + # We should be matching numpy semantics for the "order" keyword in 'copy' + arr2d = data.repeat(2).reshape(-1, 2) + assert arr2d._ndarray.flags["C_CONTIGUOUS"] + + res = arr2d.copy() + assert res._ndarray.flags["C_CONTIGUOUS"] + + res = arr2d[::2, ::2].copy() + assert res._ndarray.flags["C_CONTIGUOUS"] + + res = arr2d.copy("F") + assert not res._ndarray.flags["C_CONTIGUOUS"] + assert res._ndarray.flags["F_CONTIGUOUS"] + + res = arr2d.copy("K") + assert res._ndarray.flags["C_CONTIGUOUS"] + + res = arr2d.T.copy("K") + assert not res._ndarray.flags["C_CONTIGUOUS"] + assert res._ndarray.flags["F_CONTIGUOUS"] + + # order not accepted by numpy + msg = r"order must be one of 'C', 'F', 'A', or 'K' \(got 'Q'\)" + with pytest.raises(ValueError, match=msg): + arr2d.copy("Q") + + # neither contiguity + arr_nc = arr2d[::2] + assert not arr_nc._ndarray.flags["C_CONTIGUOUS"] + assert not arr_nc._ndarray.flags["F_CONTIGUOUS"] + + assert arr_nc.copy()._ndarray.flags["C_CONTIGUOUS"] + assert not arr_nc.copy()._ndarray.flags["F_CONTIGUOUS"] + + assert arr_nc.copy("C")._ndarray.flags["C_CONTIGUOUS"] + assert not arr_nc.copy("C")._ndarray.flags["F_CONTIGUOUS"] + + assert not arr_nc.copy("F")._ndarray.flags["C_CONTIGUOUS"] + assert arr_nc.copy("F")._ndarray.flags["F_CONTIGUOUS"] + + assert arr_nc.copy("K")._ndarray.flags["C_CONTIGUOUS"] + assert not arr_nc.copy("K")._ndarray.flags["F_CONTIGUOUS"] diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/dtype.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/dtype.py new file mode 100644 index 0000000000000000000000000000000000000000..c7b768f6e3c88f32a7f9f5c945642e4d69a17c66 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/dtype.py @@ -0,0 +1,123 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm +from pandas.api.types import ( + infer_dtype, + is_object_dtype, + is_string_dtype, +) + + +class BaseDtypeTests: + """Base class for ExtensionDtype classes""" + + def test_name(self, dtype): + assert isinstance(dtype.name, str) + + def test_kind(self, dtype): + valid = set("biufcmMOSUV") + assert dtype.kind in valid + + def test_is_dtype_from_name(self, dtype): + result = type(dtype).is_dtype(dtype.name) + assert result is True + + def test_is_dtype_unboxes_dtype(self, data, dtype): + assert dtype.is_dtype(data) is True + + def test_is_dtype_from_self(self, dtype): + result = type(dtype).is_dtype(dtype) + assert result is True + + def test_is_dtype_other_input(self, dtype): + assert dtype.is_dtype([1, 2, 3]) is False + + def test_is_not_string_type(self, dtype): + assert not is_string_dtype(dtype) + + def test_is_not_object_type(self, dtype): + assert not is_object_dtype(dtype) + + def test_eq_with_str(self, dtype): + assert dtype == dtype.name + assert dtype != dtype.name + "-suffix" + + def test_eq_with_numpy_object(self, dtype): + assert dtype != np.dtype("object") + + def test_eq_with_self(self, dtype): + assert dtype == dtype + assert dtype != object() + + def test_array_type(self, data, dtype): + assert dtype.construct_array_type() is type(data) + + def test_check_dtype(self, data): + dtype = data.dtype + + # check equivalency for using .dtypes + df = pd.DataFrame( + { + "A": pd.Series(data, dtype=dtype), + "B": data, + "C": pd.Series(["foo"] * len(data), dtype=object), + "D": 1, + } + ) + result = df.dtypes == str(dtype) + assert np.dtype("int64") != "Int64" + + expected = pd.Series([True, True, False, False], index=list("ABCD")) + + tm.assert_series_equal(result, expected) + + expected = pd.Series([True, True, False, False], index=list("ABCD")) + result = df.dtypes.apply(str) == str(dtype) + tm.assert_series_equal(result, expected) + + def test_hashable(self, dtype): + hash(dtype) # no error + + def test_str(self, dtype): + assert str(dtype) == dtype.name + + def test_eq(self, dtype): + assert dtype == dtype.name + assert dtype != "anonther_type" + + def test_construct_from_string_own_name(self, dtype): + result = dtype.construct_from_string(dtype.name) + assert type(result) is type(dtype) + + # check OK as classmethod + result = type(dtype).construct_from_string(dtype.name) + assert type(result) is type(dtype) + + def test_construct_from_string_another_type_raises(self, dtype): + msg = f"Cannot construct a '{type(dtype).__name__}' from 'another_type'" + with pytest.raises(TypeError, match=msg): + type(dtype).construct_from_string("another_type") + + def test_construct_from_string_wrong_type_raises(self, dtype): + with pytest.raises( + TypeError, + match="'construct_from_string' expects a string, got ", + ): + type(dtype).construct_from_string(0) + + def test_get_common_dtype(self, dtype): + # in practice we will not typically call this with a 1-length list + # (we shortcut to just use that dtype as the common dtype), but + # still testing as good practice to have this working (and it is the + # only case we can test in general) + assert dtype._get_common_dtype([dtype]) == dtype + + @pytest.mark.parametrize("skipna", [True, False]) + def test_infer_dtype(self, data, data_missing, skipna): + # only testing that this works without raising an error + res = infer_dtype(data, skipna=skipna) + assert isinstance(res, str) + res = infer_dtype(data_missing, skipna=skipna) + assert isinstance(res, str) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/getitem.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/getitem.py new file mode 100644 index 0000000000000000000000000000000000000000..5f0c1b960a4758e7cd5423188d5f190922b4eee4 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/getitem.py @@ -0,0 +1,469 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm + + +class BaseGetitemTests: + """Tests for ExtensionArray.__getitem__.""" + + def test_iloc_series(self, data): + ser = pd.Series(data) + result = ser.iloc[:4] + expected = pd.Series(data[:4]) + tm.assert_series_equal(result, expected) + + result = ser.iloc[[0, 1, 2, 3]] + tm.assert_series_equal(result, expected) + + def test_iloc_frame(self, data): + df = pd.DataFrame({"A": data, "B": np.arange(len(data), dtype="int64")}) + expected = pd.DataFrame({"A": data[:4]}) + + # slice -> frame + result = df.iloc[:4, [0]] + tm.assert_frame_equal(result, expected) + + # sequence -> frame + result = df.iloc[[0, 1, 2, 3], [0]] + tm.assert_frame_equal(result, expected) + + expected = pd.Series(data[:4], name="A") + + # slice -> series + result = df.iloc[:4, 0] + tm.assert_series_equal(result, expected) + + # sequence -> series + result = df.iloc[:4, 0] + tm.assert_series_equal(result, expected) + + # GH#32959 slice columns with step + result = df.iloc[:, ::2] + tm.assert_frame_equal(result, df[["A"]]) + result = df[["B", "A"]].iloc[:, ::2] + tm.assert_frame_equal(result, df[["B"]]) + + def test_iloc_frame_single_block(self, data): + # GH#32959 null slice along index, slice along columns with single-block + df = pd.DataFrame({"A": data}) + + result = df.iloc[:, :] + tm.assert_frame_equal(result, df) + + result = df.iloc[:, :1] + tm.assert_frame_equal(result, df) + + result = df.iloc[:, :2] + tm.assert_frame_equal(result, df) + + result = df.iloc[:, ::2] + tm.assert_frame_equal(result, df) + + result = df.iloc[:, 1:2] + tm.assert_frame_equal(result, df.iloc[:, :0]) + + result = df.iloc[:, -1:] + tm.assert_frame_equal(result, df) + + def test_loc_series(self, data): + ser = pd.Series(data) + result = ser.loc[:3] + expected = pd.Series(data[:4]) + tm.assert_series_equal(result, expected) + + result = ser.loc[[0, 1, 2, 3]] + tm.assert_series_equal(result, expected) + + def test_loc_frame(self, data): + df = pd.DataFrame({"A": data, "B": np.arange(len(data), dtype="int64")}) + expected = pd.DataFrame({"A": data[:4]}) + + # slice -> frame + result = df.loc[:3, ["A"]] + tm.assert_frame_equal(result, expected) + + # sequence -> frame + result = df.loc[[0, 1, 2, 3], ["A"]] + tm.assert_frame_equal(result, expected) + + expected = pd.Series(data[:4], name="A") + + # slice -> series + result = df.loc[:3, "A"] + tm.assert_series_equal(result, expected) + + # sequence -> series + result = df.loc[:3, "A"] + tm.assert_series_equal(result, expected) + + def test_loc_iloc_frame_single_dtype(self, data): + # GH#27110 bug in ExtensionBlock.iget caused df.iloc[n] to incorrectly + # return a scalar + df = pd.DataFrame({"A": data}) + expected = pd.Series([data[2]], index=["A"], name=2, dtype=data.dtype) + + result = df.loc[2] + tm.assert_series_equal(result, expected) + + expected = pd.Series( + [data[-1]], index=["A"], name=len(data) - 1, dtype=data.dtype + ) + result = df.iloc[-1] + tm.assert_series_equal(result, expected) + + def test_getitem_scalar(self, data): + result = data[0] + assert isinstance(result, data.dtype.type) + + result = pd.Series(data)[0] + assert isinstance(result, data.dtype.type) + + def test_getitem_invalid(self, data): + # TODO: box over scalar, [scalar], (scalar,)? + + msg = ( + r"only integers, slices \(`:`\), ellipsis \(`...`\), numpy.newaxis " + r"\(`None`\) and integer or boolean arrays are valid indices" + ) + with pytest.raises(IndexError, match=msg): + data["foo"] + with pytest.raises(IndexError, match=msg): + data[2.5] + + ub = len(data) + msg = "|".join( + [ + "list index out of range", # json + "index out of bounds", # pyarrow + "Out of bounds access", # Sparse + f"loc must be an integer between -{ub} and {ub}", # Sparse + f"index {ub+1} is out of bounds for axis 0 with size {ub}", + f"index -{ub+1} is out of bounds for axis 0 with size {ub}", + ] + ) + with pytest.raises(IndexError, match=msg): + data[ub + 1] + with pytest.raises(IndexError, match=msg): + data[-ub - 1] + + def test_getitem_scalar_na(self, data_missing, na_cmp, na_value): + result = data_missing[0] + assert na_cmp(result, na_value) + + def test_getitem_empty(self, data): + # Indexing with empty list + result = data[[]] + assert len(result) == 0 + assert isinstance(result, type(data)) + + expected = data[np.array([], dtype="int64")] + tm.assert_extension_array_equal(result, expected) + + def test_getitem_mask(self, data): + # Empty mask, raw array + mask = np.zeros(len(data), dtype=bool) + result = data[mask] + assert len(result) == 0 + assert isinstance(result, type(data)) + + # Empty mask, in series + mask = np.zeros(len(data), dtype=bool) + result = pd.Series(data)[mask] + assert len(result) == 0 + assert result.dtype == data.dtype + + # non-empty mask, raw array + mask[0] = True + result = data[mask] + assert len(result) == 1 + assert isinstance(result, type(data)) + + # non-empty mask, in series + result = pd.Series(data)[mask] + assert len(result) == 1 + assert result.dtype == data.dtype + + def test_getitem_mask_raises(self, data): + mask = np.array([True, False]) + msg = f"Boolean index has wrong length: 2 instead of {len(data)}" + with pytest.raises(IndexError, match=msg): + data[mask] + + mask = pd.array(mask, dtype="boolean") + with pytest.raises(IndexError, match=msg): + data[mask] + + def test_getitem_boolean_array_mask(self, data): + mask = pd.array(np.zeros(data.shape, dtype="bool"), dtype="boolean") + result = data[mask] + assert len(result) == 0 + assert isinstance(result, type(data)) + + result = pd.Series(data)[mask] + assert len(result) == 0 + assert result.dtype == data.dtype + + mask[:5] = True + expected = data.take([0, 1, 2, 3, 4]) + result = data[mask] + tm.assert_extension_array_equal(result, expected) + + expected = pd.Series(expected) + result = pd.Series(data)[mask] + tm.assert_series_equal(result, expected) + + def test_getitem_boolean_na_treated_as_false(self, data): + # https://github.com/pandas-dev/pandas/issues/31503 + mask = pd.array(np.zeros(data.shape, dtype="bool"), dtype="boolean") + mask[:2] = pd.NA + mask[2:4] = True + + result = data[mask] + expected = data[mask.fillna(False)] + + tm.assert_extension_array_equal(result, expected) + + s = pd.Series(data) + + result = s[mask] + expected = s[mask.fillna(False)] + + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize( + "idx", + [[0, 1, 2], pd.array([0, 1, 2], dtype="Int64"), np.array([0, 1, 2])], + ids=["list", "integer-array", "numpy-array"], + ) + def test_getitem_integer_array(self, data, idx): + result = data[idx] + assert len(result) == 3 + assert isinstance(result, type(data)) + expected = data.take([0, 1, 2]) + tm.assert_extension_array_equal(result, expected) + + expected = pd.Series(expected) + result = pd.Series(data)[idx] + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize( + "idx", + [[0, 1, 2, pd.NA], pd.array([0, 1, 2, pd.NA], dtype="Int64")], + ids=["list", "integer-array"], + ) + def test_getitem_integer_with_missing_raises(self, data, idx): + msg = "Cannot index with an integer indexer containing NA values" + with pytest.raises(ValueError, match=msg): + data[idx] + + @pytest.mark.xfail( + reason="Tries label-based and raises KeyError; " + "in some cases raises when calling np.asarray" + ) + @pytest.mark.parametrize( + "idx", + [[0, 1, 2, pd.NA], pd.array([0, 1, 2, pd.NA], dtype="Int64")], + ids=["list", "integer-array"], + ) + def test_getitem_series_integer_with_missing_raises(self, data, idx): + msg = "Cannot index with an integer indexer containing NA values" + # TODO: this raises KeyError about labels not found (it tries label-based) + + ser = pd.Series(data, index=[chr(100 + i) for i in range(len(data))]) + with pytest.raises(ValueError, match=msg): + ser[idx] + + def test_getitem_slice(self, data): + # getitem[slice] should return an array + result = data[slice(0)] # empty + assert isinstance(result, type(data)) + + result = data[slice(1)] # scalar + assert isinstance(result, type(data)) + + def test_getitem_ellipsis_and_slice(self, data): + # GH#40353 this is called from slice_block_rows + result = data[..., :] + tm.assert_extension_array_equal(result, data) + + result = data[:, ...] + tm.assert_extension_array_equal(result, data) + + result = data[..., :3] + tm.assert_extension_array_equal(result, data[:3]) + + result = data[:3, ...] + tm.assert_extension_array_equal(result, data[:3]) + + result = data[..., ::2] + tm.assert_extension_array_equal(result, data[::2]) + + result = data[::2, ...] + tm.assert_extension_array_equal(result, data[::2]) + + def test_get(self, data): + # GH 20882 + s = pd.Series(data, index=[2 * i for i in range(len(data))]) + assert s.get(4) == s.iloc[2] + + result = s.get([4, 6]) + expected = s.iloc[[2, 3]] + tm.assert_series_equal(result, expected) + + result = s.get(slice(2)) + expected = s.iloc[[0, 1]] + tm.assert_series_equal(result, expected) + + assert s.get(-1) is None + assert s.get(s.index.max() + 1) is None + + s = pd.Series(data[:6], index=list("abcdef")) + assert s.get("c") == s.iloc[2] + + result = s.get(slice("b", "d")) + expected = s.iloc[[1, 2, 3]] + tm.assert_series_equal(result, expected) + + result = s.get("Z") + assert result is None + + msg = "Series.__getitem__ treating keys as positions is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + assert s.get(4) == s.iloc[4] + assert s.get(-1) == s.iloc[-1] + assert s.get(len(s)) is None + + # GH 21257 + s = pd.Series(data) + with tm.assert_produces_warning(None): + # GH#45324 make sure we aren't giving a spurious FutureWarning + s2 = s[::2] + assert s2.get(1) is None + + def test_take_sequence(self, data): + result = pd.Series(data)[[0, 1, 3]] + assert result.iloc[0] == data[0] + assert result.iloc[1] == data[1] + assert result.iloc[2] == data[3] + + def test_take(self, data, na_value, na_cmp): + result = data.take([0, -1]) + assert result.dtype == data.dtype + assert result[0] == data[0] + assert result[1] == data[-1] + + result = data.take([0, -1], allow_fill=True, fill_value=na_value) + assert result[0] == data[0] + assert na_cmp(result[1], na_value) + + with pytest.raises(IndexError, match="out of bounds"): + data.take([len(data) + 1]) + + def test_take_empty(self, data, na_value, na_cmp): + empty = data[:0] + + result = empty.take([-1], allow_fill=True) + assert na_cmp(result[0], na_value) + + msg = "cannot do a non-empty take from an empty axes|out of bounds" + + with pytest.raises(IndexError, match=msg): + empty.take([-1]) + + with pytest.raises(IndexError, match="cannot do a non-empty take"): + empty.take([0, 1]) + + def test_take_negative(self, data): + # https://github.com/pandas-dev/pandas/issues/20640 + n = len(data) + result = data.take([0, -n, n - 1, -1]) + expected = data.take([0, 0, n - 1, n - 1]) + tm.assert_extension_array_equal(result, expected) + + def test_take_non_na_fill_value(self, data_missing): + fill_value = data_missing[1] # valid + na = data_missing[0] + + arr = data_missing._from_sequence( + [na, fill_value, na], dtype=data_missing.dtype + ) + result = arr.take([-1, 1], fill_value=fill_value, allow_fill=True) + expected = arr.take([1, 1]) + tm.assert_extension_array_equal(result, expected) + + def test_take_pandas_style_negative_raises(self, data, na_value): + with pytest.raises(ValueError, match=""): + data.take([0, -2], fill_value=na_value, allow_fill=True) + + @pytest.mark.parametrize("allow_fill", [True, False]) + def test_take_out_of_bounds_raises(self, data, allow_fill): + arr = data[:3] + + with pytest.raises(IndexError, match="out of bounds|out-of-bounds"): + arr.take(np.asarray([0, 3]), allow_fill=allow_fill) + + def test_take_series(self, data): + s = pd.Series(data) + result = s.take([0, -1]) + expected = pd.Series( + data._from_sequence([data[0], data[len(data) - 1]], dtype=s.dtype), + index=[0, len(data) - 1], + ) + tm.assert_series_equal(result, expected) + + def test_reindex(self, data, na_value): + s = pd.Series(data) + result = s.reindex([0, 1, 3]) + expected = pd.Series(data.take([0, 1, 3]), index=[0, 1, 3]) + tm.assert_series_equal(result, expected) + + n = len(data) + result = s.reindex([-1, 0, n]) + expected = pd.Series( + data._from_sequence([na_value, data[0], na_value], dtype=s.dtype), + index=[-1, 0, n], + ) + tm.assert_series_equal(result, expected) + + result = s.reindex([n, n + 1]) + expected = pd.Series( + data._from_sequence([na_value, na_value], dtype=s.dtype), index=[n, n + 1] + ) + tm.assert_series_equal(result, expected) + + def test_reindex_non_na_fill_value(self, data_missing): + valid = data_missing[1] + na = data_missing[0] + + arr = data_missing._from_sequence([na, valid], dtype=data_missing.dtype) + ser = pd.Series(arr) + result = ser.reindex([0, 1, 2], fill_value=valid) + expected = pd.Series( + data_missing._from_sequence([na, valid, valid], dtype=data_missing.dtype) + ) + + tm.assert_series_equal(result, expected) + + def test_loc_len1(self, data): + # see GH-27785 take_nd with indexer of len 1 resulting in wrong ndim + df = pd.DataFrame({"A": data}) + res = df.loc[[0], "A"] + assert res.ndim == 1 + assert res._mgr.arrays[0].ndim == 1 + if hasattr(res._mgr, "blocks"): + assert res._mgr._block.ndim == 1 + + def test_item(self, data): + # https://github.com/pandas-dev/pandas/pull/30175 + s = pd.Series(data) + result = s[:1].item() + assert result == data[0] + + msg = "can only convert an array of size 1 to a Python scalar" + with pytest.raises(ValueError, match=msg): + s[:0].item() + + with pytest.raises(ValueError, match=msg): + s.item() diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/groupby.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/groupby.py new file mode 100644 index 0000000000000000000000000000000000000000..6947e672f3d44f8c48dec6bb53cf5e6bd85182ab --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/groupby.py @@ -0,0 +1,174 @@ +import re + +import pytest + +from pandas.core.dtypes.common import ( + is_bool_dtype, + is_numeric_dtype, + is_object_dtype, + is_string_dtype, +) + +import pandas as pd +import pandas._testing as tm + + +@pytest.mark.filterwarnings( + "ignore:The default of observed=False is deprecated:FutureWarning" +) +class BaseGroupbyTests: + """Groupby-specific tests.""" + + def test_grouping_grouper(self, data_for_grouping): + df = pd.DataFrame( + { + "A": pd.Series( + ["B", "B", None, None, "A", "A", "B", "C"], dtype=object + ), + "B": data_for_grouping, + } + ) + gr1 = df.groupby("A")._grouper.groupings[0] + gr2 = df.groupby("B")._grouper.groupings[0] + + tm.assert_numpy_array_equal(gr1.grouping_vector, df.A.values) + tm.assert_extension_array_equal(gr2.grouping_vector, data_for_grouping) + + @pytest.mark.parametrize("as_index", [True, False]) + def test_groupby_extension_agg(self, as_index, data_for_grouping): + df = pd.DataFrame({"A": [1, 1, 2, 2, 3, 3, 1, 4], "B": data_for_grouping}) + + is_bool = data_for_grouping.dtype._is_boolean + if is_bool: + # only 2 unique values, and the final entry has c==b + # (see data_for_grouping docstring) + df = df.iloc[:-1] + + result = df.groupby("B", as_index=as_index).A.mean() + _, uniques = pd.factorize(data_for_grouping, sort=True) + + exp_vals = [3.0, 1.0, 4.0] + if is_bool: + exp_vals = exp_vals[:-1] + if as_index: + index = pd.Index(uniques, name="B") + expected = pd.Series(exp_vals, index=index, name="A") + tm.assert_series_equal(result, expected) + else: + expected = pd.DataFrame({"B": uniques, "A": exp_vals}) + tm.assert_frame_equal(result, expected) + + def test_groupby_agg_extension(self, data_for_grouping): + # GH#38980 groupby agg on extension type fails for non-numeric types + df = pd.DataFrame({"A": [1, 1, 2, 2, 3, 3, 1, 4], "B": data_for_grouping}) + + expected = df.iloc[[0, 2, 4, 7]] + expected = expected.set_index("A") + + result = df.groupby("A").agg({"B": "first"}) + tm.assert_frame_equal(result, expected) + + result = df.groupby("A").agg("first") + tm.assert_frame_equal(result, expected) + + result = df.groupby("A").first() + tm.assert_frame_equal(result, expected) + + def test_groupby_extension_no_sort(self, data_for_grouping): + df = pd.DataFrame({"A": [1, 1, 2, 2, 3, 3, 1, 4], "B": data_for_grouping}) + + is_bool = data_for_grouping.dtype._is_boolean + if is_bool: + # only 2 unique values, and the final entry has c==b + # (see data_for_grouping docstring) + df = df.iloc[:-1] + + result = df.groupby("B", sort=False).A.mean() + _, index = pd.factorize(data_for_grouping, sort=False) + + index = pd.Index(index, name="B") + exp_vals = [1.0, 3.0, 4.0] + if is_bool: + exp_vals = exp_vals[:-1] + expected = pd.Series(exp_vals, index=index, name="A") + tm.assert_series_equal(result, expected) + + def test_groupby_extension_transform(self, data_for_grouping): + is_bool = data_for_grouping.dtype._is_boolean + + valid = data_for_grouping[~data_for_grouping.isna()] + df = pd.DataFrame({"A": [1, 1, 3, 3, 1, 4], "B": valid}) + is_bool = data_for_grouping.dtype._is_boolean + if is_bool: + # only 2 unique values, and the final entry has c==b + # (see data_for_grouping docstring) + df = df.iloc[:-1] + + result = df.groupby("B").A.transform(len) + expected = pd.Series([3, 3, 2, 2, 3, 1], name="A") + if is_bool: + expected = expected[:-1] + + tm.assert_series_equal(result, expected) + + def test_groupby_extension_apply(self, data_for_grouping, groupby_apply_op): + df = pd.DataFrame({"A": [1, 1, 2, 2, 3, 3, 1, 4], "B": data_for_grouping}) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + df.groupby("B", group_keys=False, observed=False).apply(groupby_apply_op) + df.groupby("B", group_keys=False, observed=False).A.apply(groupby_apply_op) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + df.groupby("A", group_keys=False, observed=False).apply(groupby_apply_op) + df.groupby("A", group_keys=False, observed=False).B.apply(groupby_apply_op) + + def test_groupby_apply_identity(self, data_for_grouping): + df = pd.DataFrame({"A": [1, 1, 2, 2, 3, 3, 1, 4], "B": data_for_grouping}) + result = df.groupby("A").B.apply(lambda x: x.array) + expected = pd.Series( + [ + df.B.iloc[[0, 1, 6]].array, + df.B.iloc[[2, 3]].array, + df.B.iloc[[4, 5]].array, + df.B.iloc[[7]].array, + ], + index=pd.Index([1, 2, 3, 4], name="A"), + name="B", + ) + tm.assert_series_equal(result, expected) + + def test_in_numeric_groupby(self, data_for_grouping): + df = pd.DataFrame( + { + "A": [1, 1, 2, 2, 3, 3, 1, 4], + "B": data_for_grouping, + "C": [1, 1, 1, 1, 1, 1, 1, 1], + } + ) + + dtype = data_for_grouping.dtype + if ( + is_numeric_dtype(dtype) + or is_bool_dtype(dtype) + or dtype.name == "decimal" + or is_string_dtype(dtype) + or is_object_dtype(dtype) + or dtype.kind == "m" # in particular duration[*][pyarrow] + ): + expected = pd.Index(["B", "C"]) + result = df.groupby("A").sum().columns + else: + expected = pd.Index(["C"]) + + msg = "|".join( + [ + # period/datetime + "does not support sum operations", + # all others + re.escape(f"agg function failed [how->sum,dtype->{dtype}"), + ] + ) + with pytest.raises(TypeError, match=msg): + df.groupby("A").sum() + result = df.groupby("A").sum(numeric_only=True).columns + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/index.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/index.py new file mode 100644 index 0000000000000000000000000000000000000000..72c4ebfb5d84ae82f74a4c814e72372a651ae6b8 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/index.py @@ -0,0 +1,19 @@ +""" +Tests for Indexes backed by arbitrary ExtensionArrays. +""" +import pandas as pd + + +class BaseIndexTests: + """Tests for Index object backed by an ExtensionArray""" + + def test_index_from_array(self, data): + idx = pd.Index(data) + assert data.dtype == idx.dtype + + def test_index_from_listlike_with_dtype(self, data): + idx = pd.Index(data, dtype=data.dtype) + assert idx.dtype == data.dtype + + idx = pd.Index(list(data), dtype=data.dtype) + assert idx.dtype == data.dtype diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/interface.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/interface.py new file mode 100644 index 0000000000000000000000000000000000000000..38cece7da3308d6ec4b484238d702cf298ebcca0 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/interface.py @@ -0,0 +1,172 @@ +import warnings + +import numpy as np +import pytest + +from pandas.compat.numpy import np_version_gt2 + +from pandas.core.dtypes.cast import construct_1d_object_array_from_listlike +from pandas.core.dtypes.common import is_extension_array_dtype +from pandas.core.dtypes.dtypes import ExtensionDtype + +import pandas as pd +import pandas._testing as tm + + +class BaseInterfaceTests: + """Tests that the basic interface is satisfied.""" + + # ------------------------------------------------------------------------ + # Interface + # ------------------------------------------------------------------------ + + def test_len(self, data): + assert len(data) == 100 + + def test_size(self, data): + assert data.size == 100 + + def test_ndim(self, data): + assert data.ndim == 1 + + def test_can_hold_na_valid(self, data): + # GH-20761 + assert data._can_hold_na is True + + def test_contains(self, data, data_missing): + # GH-37867 + # Tests for membership checks. Membership checks for nan-likes is tricky and + # the settled on rule is: `nan_like in arr` is True if nan_like is + # arr.dtype.na_value and arr.isna().any() is True. Else the check returns False. + + na_value = data.dtype.na_value + # ensure data without missing values + data = data[~data.isna()] + + # first elements are non-missing + assert data[0] in data + assert data_missing[0] in data_missing + + # check the presence of na_value + assert na_value in data_missing + assert na_value not in data + + # the data can never contain other nan-likes than na_value + for na_value_obj in tm.NULL_OBJECTS: + if na_value_obj is na_value or type(na_value_obj) == type(na_value): + # type check for e.g. two instances of Decimal("NAN") + continue + assert na_value_obj not in data + assert na_value_obj not in data_missing + + def test_memory_usage(self, data): + s = pd.Series(data) + result = s.memory_usage(index=False) + assert result == s.nbytes + + def test_array_interface(self, data): + result = np.array(data) + assert result[0] == data[0] + + result = np.array(data, dtype=object) + expected = np.array(list(data), dtype=object) + if expected.ndim > 1: + # nested data, explicitly construct as 1D + expected = construct_1d_object_array_from_listlike(list(data)) + tm.assert_numpy_array_equal(result, expected) + + def test_array_interface_copy(self, data): + result_copy1 = np.array(data, copy=True) + result_copy2 = np.array(data, copy=True) + assert not np.may_share_memory(result_copy1, result_copy2) + + if not np_version_gt2: + # copy=False semantics are only supported in NumPy>=2. + return + + warning_raised = False + msg = "Starting with NumPy 2.0, the behavior of the 'copy' keyword has changed" + with warnings.catch_warnings(record=True) as w: + warnings.simplefilter("always") + result_nocopy1 = np.array(data, copy=False) + assert len(w) <= 1 + if len(w): + warning_raised = True + assert msg in str(w[0].message) + + with warnings.catch_warnings(record=True) as w: + warnings.simplefilter("always") + result_nocopy2 = np.array(data, copy=False) + assert len(w) <= 1 + if len(w): + warning_raised = True + assert msg in str(w[0].message) + + if not warning_raised: + # If copy=False was given and did not raise, these must share the same data + assert np.may_share_memory(result_nocopy1, result_nocopy2) + + def test_is_extension_array_dtype(self, data): + assert is_extension_array_dtype(data) + assert is_extension_array_dtype(data.dtype) + assert is_extension_array_dtype(pd.Series(data)) + assert isinstance(data.dtype, ExtensionDtype) + + def test_no_values_attribute(self, data): + # GH-20735: EA's with .values attribute give problems with internal + # code, disallowing this for now until solved + assert not hasattr(data, "values") + assert not hasattr(data, "_values") + + def test_is_numeric_honored(self, data): + result = pd.Series(data) + if hasattr(result._mgr, "blocks"): + assert result._mgr.blocks[0].is_numeric is data.dtype._is_numeric + + def test_isna_extension_array(self, data_missing): + # If your `isna` returns an ExtensionArray, you must also implement + # _reduce. At the *very* least, you must implement any and all + na = data_missing.isna() + if is_extension_array_dtype(na): + assert na._reduce("any") + assert na.any() + + assert not na._reduce("all") + assert not na.all() + + assert na.dtype._is_boolean + + def test_copy(self, data): + # GH#27083 removing deep keyword from EA.copy + assert data[0] != data[1] + result = data.copy() + + if data.dtype._is_immutable: + pytest.skip(f"test_copy assumes mutability and {data.dtype} is immutable") + + data[1] = data[0] + assert result[1] != result[0] + + def test_view(self, data): + # view with no dtype should return a shallow copy, *not* the same + # object + assert data[1] != data[0] + + result = data.view() + assert result is not data + assert type(result) == type(data) + + if data.dtype._is_immutable: + pytest.skip(f"test_view assumes mutability and {data.dtype} is immutable") + + result[1] = result[0] + assert data[1] == data[0] + + # check specifically that the `dtype` kwarg is accepted + data.view(dtype=None) + + def test_tolist(self, data): + result = data.tolist() + expected = list(data) + assert isinstance(result, list) + assert result == expected diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/io.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/io.py new file mode 100644 index 0000000000000000000000000000000000000000..3a6f2eb5ba8b1854ac48a22efa02e89672b2f2ac --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/io.py @@ -0,0 +1,39 @@ +from io import StringIO + +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm +from pandas.core.arrays import ExtensionArray + + +class BaseParsingTests: + @pytest.mark.parametrize("engine", ["c", "python"]) + def test_EA_types(self, engine, data, request): + if isinstance(data.dtype, pd.CategoricalDtype): + # in parsers.pyx _convert_with_dtype there is special-casing for + # Categorical that pre-empts _from_sequence_of_strings + pass + elif isinstance(data.dtype, pd.core.dtypes.dtypes.NumpyEADtype): + # These get unwrapped internally so are treated as numpy dtypes + # in the parsers.pyx code + pass + elif ( + type(data)._from_sequence_of_strings.__func__ + is ExtensionArray._from_sequence_of_strings.__func__ + ): + # i.e. the EA hasn't overridden _from_sequence_of_strings + mark = pytest.mark.xfail( + reason="_from_sequence_of_strings not implemented", + raises=NotImplementedError, + ) + request.node.add_marker(mark) + + df = pd.DataFrame({"with_dtype": pd.Series(data, dtype=str(data.dtype))}) + csv_output = df.to_csv(index=False, na_rep=np.nan) + result = pd.read_csv( + StringIO(csv_output), dtype={"with_dtype": str(data.dtype)}, engine=engine + ) + expected = df + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/methods.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/methods.py new file mode 100644 index 0000000000000000000000000000000000000000..5cb2c14e4c841c17453e3d2fe17bab69e8813cc1 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/methods.py @@ -0,0 +1,720 @@ +import inspect +import operator + +import numpy as np +import pytest + +from pandas._typing import Dtype + +from pandas.core.dtypes.common import is_bool_dtype +from pandas.core.dtypes.dtypes import NumpyEADtype +from pandas.core.dtypes.missing import na_value_for_dtype + +import pandas as pd +import pandas._testing as tm +from pandas.core.sorting import nargsort + + +class BaseMethodsTests: + """Various Series and DataFrame methods.""" + + def test_hash_pandas_object(self, data): + # _hash_pandas_object should return a uint64 ndarray of the same length + # as the data + from pandas.core.util.hashing import _default_hash_key + + res = data._hash_pandas_object( + encoding="utf-8", hash_key=_default_hash_key, categorize=False + ) + assert res.dtype == np.uint64 + assert res.shape == data.shape + + def test_value_counts_default_dropna(self, data): + # make sure we have consistent default dropna kwarg + if not hasattr(data, "value_counts"): + pytest.skip(f"value_counts is not implemented for {type(data)}") + sig = inspect.signature(data.value_counts) + kwarg = sig.parameters["dropna"] + assert kwarg.default is True + + @pytest.mark.parametrize("dropna", [True, False]) + def test_value_counts(self, all_data, dropna): + all_data = all_data[:10] + if dropna: + other = all_data[~all_data.isna()] + else: + other = all_data + + result = pd.Series(all_data).value_counts(dropna=dropna).sort_index() + expected = pd.Series(other).value_counts(dropna=dropna).sort_index() + + tm.assert_series_equal(result, expected) + + def test_value_counts_with_normalize(self, data): + # GH 33172 + data = data[:10].unique() + values = np.array(data[~data.isna()]) + ser = pd.Series(data, dtype=data.dtype) + + result = ser.value_counts(normalize=True).sort_index() + + if not isinstance(data, pd.Categorical): + expected = pd.Series( + [1 / len(values)] * len(values), index=result.index, name="proportion" + ) + else: + expected = pd.Series(0.0, index=result.index, name="proportion") + expected[result > 0] = 1 / len(values) + + if isinstance(data.dtype, pd.StringDtype) and data.dtype.na_value is np.nan: + # TODO: avoid special-casing + expected = expected.astype("float64") + elif getattr(data.dtype, "storage", "") == "pyarrow" or isinstance( + data.dtype, pd.ArrowDtype + ): + # TODO: avoid special-casing + expected = expected.astype("double[pyarrow]") + elif na_value_for_dtype(data.dtype) is pd.NA: + # TODO(GH#44692): avoid special-casing + expected = expected.astype("Float64") + + tm.assert_series_equal(result, expected) + + def test_count(self, data_missing): + df = pd.DataFrame({"A": data_missing}) + result = df.count(axis="columns") + expected = pd.Series([0, 1]) + tm.assert_series_equal(result, expected) + + def test_series_count(self, data_missing): + # GH#26835 + ser = pd.Series(data_missing) + result = ser.count() + expected = 1 + assert result == expected + + def test_apply_simple_series(self, data): + result = pd.Series(data).apply(id) + assert isinstance(result, pd.Series) + + @pytest.mark.parametrize("na_action", [None, "ignore"]) + def test_map(self, data_missing, na_action): + result = data_missing.map(lambda x: x, na_action=na_action) + expected = data_missing.to_numpy() + tm.assert_numpy_array_equal(result, expected) + + def test_argsort(self, data_for_sorting): + result = pd.Series(data_for_sorting).argsort() + # argsort result gets passed to take, so should be np.intp + expected = pd.Series(np.array([2, 0, 1], dtype=np.intp)) + tm.assert_series_equal(result, expected) + + def test_argsort_missing_array(self, data_missing_for_sorting): + result = data_missing_for_sorting.argsort() + # argsort result gets passed to take, so should be np.intp + expected = np.array([2, 0, 1], dtype=np.intp) + tm.assert_numpy_array_equal(result, expected) + + def test_argsort_missing(self, data_missing_for_sorting): + msg = "The behavior of Series.argsort in the presence of NA values" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = pd.Series(data_missing_for_sorting).argsort() + expected = pd.Series(np.array([1, -1, 0], dtype=np.intp)) + tm.assert_series_equal(result, expected) + + def test_argmin_argmax(self, data_for_sorting, data_missing_for_sorting, na_value): + # GH 24382 + is_bool = data_for_sorting.dtype._is_boolean + + exp_argmax = 1 + exp_argmax_repeated = 3 + if is_bool: + # See data_for_sorting docstring + exp_argmax = 0 + exp_argmax_repeated = 1 + + # data_for_sorting -> [B, C, A] with A < B < C + assert data_for_sorting.argmax() == exp_argmax + assert data_for_sorting.argmin() == 2 + + # with repeated values -> first occurrence + data = data_for_sorting.take([2, 0, 0, 1, 1, 2]) + assert data.argmax() == exp_argmax_repeated + assert data.argmin() == 0 + + # with missing values + # data_missing_for_sorting -> [B, NA, A] with A < B and NA missing. + assert data_missing_for_sorting.argmax() == 0 + assert data_missing_for_sorting.argmin() == 2 + + @pytest.mark.parametrize("method", ["argmax", "argmin"]) + def test_argmin_argmax_empty_array(self, method, data): + # GH 24382 + err_msg = "attempt to get" + with pytest.raises(ValueError, match=err_msg): + getattr(data[:0], method)() + + @pytest.mark.parametrize("method", ["argmax", "argmin"]) + def test_argmin_argmax_all_na(self, method, data, na_value): + # all missing with skipna=True is the same as empty + err_msg = "attempt to get" + data_na = type(data)._from_sequence([na_value, na_value], dtype=data.dtype) + with pytest.raises(ValueError, match=err_msg): + getattr(data_na, method)() + + @pytest.mark.parametrize( + "op_name, skipna, expected", + [ + ("idxmax", True, 0), + ("idxmin", True, 2), + ("argmax", True, 0), + ("argmin", True, 2), + ("idxmax", False, np.nan), + ("idxmin", False, np.nan), + ("argmax", False, -1), + ("argmin", False, -1), + ], + ) + def test_argreduce_series( + self, data_missing_for_sorting, op_name, skipna, expected + ): + # data_missing_for_sorting -> [B, NA, A] with A < B and NA missing. + warn = None + msg = "The behavior of Series.argmax/argmin" + if op_name.startswith("arg") and expected == -1: + warn = FutureWarning + if op_name.startswith("idx") and np.isnan(expected): + warn = FutureWarning + msg = f"The behavior of Series.{op_name}" + ser = pd.Series(data_missing_for_sorting) + with tm.assert_produces_warning(warn, match=msg): + result = getattr(ser, op_name)(skipna=skipna) + tm.assert_almost_equal(result, expected) + + def test_argmax_argmin_no_skipna_notimplemented(self, data_missing_for_sorting): + # GH#38733 + data = data_missing_for_sorting + + with pytest.raises(NotImplementedError, match=""): + data.argmin(skipna=False) + + with pytest.raises(NotImplementedError, match=""): + data.argmax(skipna=False) + + @pytest.mark.parametrize( + "na_position, expected", + [ + ("last", np.array([2, 0, 1], dtype=np.dtype("intp"))), + ("first", np.array([1, 2, 0], dtype=np.dtype("intp"))), + ], + ) + def test_nargsort(self, data_missing_for_sorting, na_position, expected): + # GH 25439 + result = nargsort(data_missing_for_sorting, na_position=na_position) + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize("ascending", [True, False]) + def test_sort_values(self, data_for_sorting, ascending, sort_by_key): + ser = pd.Series(data_for_sorting) + result = ser.sort_values(ascending=ascending, key=sort_by_key) + expected = ser.iloc[[2, 0, 1]] + if not ascending: + # GH 35922. Expect stable sort + if ser.nunique() == 2: + expected = ser.iloc[[0, 1, 2]] + else: + expected = ser.iloc[[1, 0, 2]] + + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("ascending", [True, False]) + def test_sort_values_missing( + self, data_missing_for_sorting, ascending, sort_by_key + ): + ser = pd.Series(data_missing_for_sorting) + result = ser.sort_values(ascending=ascending, key=sort_by_key) + if ascending: + expected = ser.iloc[[2, 0, 1]] + else: + expected = ser.iloc[[0, 2, 1]] + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("ascending", [True, False]) + def test_sort_values_frame(self, data_for_sorting, ascending): + df = pd.DataFrame({"A": [1, 2, 1], "B": data_for_sorting}) + result = df.sort_values(["A", "B"]) + expected = pd.DataFrame( + {"A": [1, 1, 2], "B": data_for_sorting.take([2, 0, 1])}, index=[2, 0, 1] + ) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("keep", ["first", "last", False]) + def test_duplicated(self, data, keep): + arr = data.take([0, 1, 0, 1]) + result = arr.duplicated(keep=keep) + if keep == "first": + expected = np.array([False, False, True, True]) + elif keep == "last": + expected = np.array([True, True, False, False]) + else: + expected = np.array([True, True, True, True]) + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize("box", [pd.Series, lambda x: x]) + @pytest.mark.parametrize("method", [lambda x: x.unique(), pd.unique]) + def test_unique(self, data, box, method): + duplicated = box(data._from_sequence([data[0], data[0]], dtype=data.dtype)) + + result = method(duplicated) + + assert len(result) == 1 + assert isinstance(result, type(data)) + assert result[0] == duplicated[0] + + def test_factorize(self, data_for_grouping): + codes, uniques = pd.factorize(data_for_grouping, use_na_sentinel=True) + + is_bool = data_for_grouping.dtype._is_boolean + if is_bool: + # only 2 unique values + expected_codes = np.array([0, 0, -1, -1, 1, 1, 0, 0], dtype=np.intp) + expected_uniques = data_for_grouping.take([0, 4]) + else: + expected_codes = np.array([0, 0, -1, -1, 1, 1, 0, 2], dtype=np.intp) + expected_uniques = data_for_grouping.take([0, 4, 7]) + + tm.assert_numpy_array_equal(codes, expected_codes) + tm.assert_extension_array_equal(uniques, expected_uniques) + + def test_factorize_equivalence(self, data_for_grouping): + codes_1, uniques_1 = pd.factorize(data_for_grouping, use_na_sentinel=True) + codes_2, uniques_2 = data_for_grouping.factorize(use_na_sentinel=True) + + tm.assert_numpy_array_equal(codes_1, codes_2) + tm.assert_extension_array_equal(uniques_1, uniques_2) + assert len(uniques_1) == len(pd.unique(uniques_1)) + assert uniques_1.dtype == data_for_grouping.dtype + + def test_factorize_empty(self, data): + codes, uniques = pd.factorize(data[:0]) + expected_codes = np.array([], dtype=np.intp) + expected_uniques = type(data)._from_sequence([], dtype=data[:0].dtype) + + tm.assert_numpy_array_equal(codes, expected_codes) + tm.assert_extension_array_equal(uniques, expected_uniques) + + def test_fillna_copy_frame(self, data_missing): + arr = data_missing.take([1, 1]) + df = pd.DataFrame({"A": arr}) + df_orig = df.copy() + + filled_val = df.iloc[0, 0] + result = df.fillna(filled_val) + + result.iloc[0, 0] = filled_val + + tm.assert_frame_equal(df, df_orig) + + def test_fillna_copy_series(self, data_missing): + arr = data_missing.take([1, 1]) + ser = pd.Series(arr, copy=False) + ser_orig = ser.copy() + + filled_val = ser[0] + result = ser.fillna(filled_val) + result.iloc[0] = filled_val + + tm.assert_series_equal(ser, ser_orig) + + def test_fillna_length_mismatch(self, data_missing): + msg = "Length of 'value' does not match." + with pytest.raises(ValueError, match=msg): + data_missing.fillna(data_missing.take([1])) + + # Subclasses can override if we expect e.g Sparse[bool], boolean, pyarrow[bool] + _combine_le_expected_dtype: Dtype = NumpyEADtype("bool") + + def test_combine_le(self, data_repeated): + # GH 20825 + # Test that combine works when doing a <= (le) comparison + orig_data1, orig_data2 = data_repeated(2) + s1 = pd.Series(orig_data1) + s2 = pd.Series(orig_data2) + result = s1.combine(s2, lambda x1, x2: x1 <= x2) + expected = pd.Series( + pd.array( + [a <= b for (a, b) in zip(list(orig_data1), list(orig_data2))], + dtype=self._combine_le_expected_dtype, + ) + ) + tm.assert_series_equal(result, expected) + + val = s1.iloc[0] + result = s1.combine(val, lambda x1, x2: x1 <= x2) + expected = pd.Series( + pd.array( + [a <= val for a in list(orig_data1)], + dtype=self._combine_le_expected_dtype, + ) + ) + tm.assert_series_equal(result, expected) + + def test_combine_add(self, data_repeated): + # GH 20825 + orig_data1, orig_data2 = data_repeated(2) + s1 = pd.Series(orig_data1) + s2 = pd.Series(orig_data2) + + # Check if the operation is supported pointwise for our scalars. If not, + # we will expect Series.combine to raise as well. + try: + with np.errstate(over="ignore"): + expected = pd.Series( + orig_data1._from_sequence( + [a + b for (a, b) in zip(list(orig_data1), list(orig_data2))] + ) + ) + except TypeError: + # If the operation is not supported pointwise for our scalars, + # then Series.combine should also raise + with pytest.raises(TypeError): + s1.combine(s2, lambda x1, x2: x1 + x2) + return + + result = s1.combine(s2, lambda x1, x2: x1 + x2) + tm.assert_series_equal(result, expected) + + val = s1.iloc[0] + result = s1.combine(val, lambda x1, x2: x1 + x2) + expected = pd.Series( + orig_data1._from_sequence([a + val for a in list(orig_data1)]) + ) + tm.assert_series_equal(result, expected) + + def test_combine_first(self, data): + # https://github.com/pandas-dev/pandas/issues/24147 + a = pd.Series(data[:3]) + b = pd.Series(data[2:5], index=[2, 3, 4]) + result = a.combine_first(b) + expected = pd.Series(data[:5]) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("frame", [True, False]) + @pytest.mark.parametrize( + "periods, indices", + [(-2, [2, 3, 4, -1, -1]), (0, [0, 1, 2, 3, 4]), (2, [-1, -1, 0, 1, 2])], + ) + def test_container_shift(self, data, frame, periods, indices): + # https://github.com/pandas-dev/pandas/issues/22386 + subset = data[:5] + data = pd.Series(subset, name="A") + expected = pd.Series(subset.take(indices, allow_fill=True), name="A") + + if frame: + result = data.to_frame(name="A").assign(B=1).shift(periods) + expected = pd.concat( + [expected, pd.Series([1] * 5, name="B").shift(periods)], axis=1 + ) + compare = tm.assert_frame_equal + else: + result = data.shift(periods) + compare = tm.assert_series_equal + + compare(result, expected) + + def test_shift_0_periods(self, data): + # GH#33856 shifting with periods=0 should return a copy, not same obj + result = data.shift(0) + assert data[0] != data[1] # otherwise below is invalid + data[0] = data[1] + assert result[0] != result[1] # i.e. not the same object/view + + @pytest.mark.parametrize("periods", [1, -2]) + def test_diff(self, data, periods): + data = data[:5] + if is_bool_dtype(data.dtype): + op = operator.xor + else: + op = operator.sub + try: + # does this array implement ops? + op(data, data) + except Exception: + pytest.skip(f"{type(data)} does not support diff") + s = pd.Series(data) + result = s.diff(periods) + expected = pd.Series(op(data, data.shift(periods))) + tm.assert_series_equal(result, expected) + + df = pd.DataFrame({"A": data, "B": [1.0] * 5}) + result = df.diff(periods) + if periods == 1: + b = [np.nan, 0, 0, 0, 0] + else: + b = [0, 0, 0, np.nan, np.nan] + expected = pd.DataFrame({"A": expected, "B": b}) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "periods, indices", + [[-4, [-1, -1]], [-1, [1, -1]], [0, [0, 1]], [1, [-1, 0]], [4, [-1, -1]]], + ) + def test_shift_non_empty_array(self, data, periods, indices): + # https://github.com/pandas-dev/pandas/issues/23911 + subset = data[:2] + result = subset.shift(periods) + expected = subset.take(indices, allow_fill=True) + tm.assert_extension_array_equal(result, expected) + + @pytest.mark.parametrize("periods", [-4, -1, 0, 1, 4]) + def test_shift_empty_array(self, data, periods): + # https://github.com/pandas-dev/pandas/issues/23911 + empty = data[:0] + result = empty.shift(periods) + expected = empty + tm.assert_extension_array_equal(result, expected) + + def test_shift_zero_copies(self, data): + # GH#31502 + result = data.shift(0) + assert result is not data + + result = data[:0].shift(2) + assert result is not data + + def test_shift_fill_value(self, data): + arr = data[:4] + fill_value = data[0] + result = arr.shift(1, fill_value=fill_value) + expected = data.take([0, 0, 1, 2]) + tm.assert_extension_array_equal(result, expected) + + result = arr.shift(-2, fill_value=fill_value) + expected = data.take([2, 3, 0, 0]) + tm.assert_extension_array_equal(result, expected) + + def test_not_hashable(self, data): + # We are in general mutable, so not hashable + with pytest.raises(TypeError, match="unhashable type"): + hash(data) + + def test_hash_pandas_object_works(self, data, as_frame): + # https://github.com/pandas-dev/pandas/issues/23066 + data = pd.Series(data) + if as_frame: + data = data.to_frame() + a = pd.util.hash_pandas_object(data) + b = pd.util.hash_pandas_object(data) + tm.assert_equal(a, b) + + def test_searchsorted(self, data_for_sorting, as_series): + if data_for_sorting.dtype._is_boolean: + return self._test_searchsorted_bool_dtypes(data_for_sorting, as_series) + + b, c, a = data_for_sorting + arr = data_for_sorting.take([2, 0, 1]) # to get [a, b, c] + + if as_series: + arr = pd.Series(arr) + assert arr.searchsorted(a) == 0 + assert arr.searchsorted(a, side="right") == 1 + + assert arr.searchsorted(b) == 1 + assert arr.searchsorted(b, side="right") == 2 + + assert arr.searchsorted(c) == 2 + assert arr.searchsorted(c, side="right") == 3 + + result = arr.searchsorted(arr.take([0, 2])) + expected = np.array([0, 2], dtype=np.intp) + + tm.assert_numpy_array_equal(result, expected) + + # sorter + sorter = np.array([1, 2, 0]) + assert data_for_sorting.searchsorted(a, sorter=sorter) == 0 + + def _test_searchsorted_bool_dtypes(self, data_for_sorting, as_series): + # We call this from test_searchsorted in cases where we have a + # boolean-like dtype. The non-bool test assumes we have more than 2 + # unique values. + dtype = data_for_sorting.dtype + data_for_sorting = pd.array([True, False], dtype=dtype) + b, a = data_for_sorting + arr = type(data_for_sorting)._from_sequence([a, b]) + + if as_series: + arr = pd.Series(arr) + assert arr.searchsorted(a) == 0 + assert arr.searchsorted(a, side="right") == 1 + + assert arr.searchsorted(b) == 1 + assert arr.searchsorted(b, side="right") == 2 + + result = arr.searchsorted(arr.take([0, 1])) + expected = np.array([0, 1], dtype=np.intp) + + tm.assert_numpy_array_equal(result, expected) + + # sorter + sorter = np.array([1, 0]) + assert data_for_sorting.searchsorted(a, sorter=sorter) == 0 + + def test_where_series(self, data, na_value, as_frame): + assert data[0] != data[1] + cls = type(data) + a, b = data[:2] + + orig = pd.Series(cls._from_sequence([a, a, b, b], dtype=data.dtype)) + ser = orig.copy() + cond = np.array([True, True, False, False]) + + if as_frame: + ser = ser.to_frame(name="a") + cond = cond.reshape(-1, 1) + + result = ser.where(cond) + expected = pd.Series( + cls._from_sequence([a, a, na_value, na_value], dtype=data.dtype) + ) + + if as_frame: + expected = expected.to_frame(name="a") + tm.assert_equal(result, expected) + + ser.mask(~cond, inplace=True) + tm.assert_equal(ser, expected) + + # array other + ser = orig.copy() + if as_frame: + ser = ser.to_frame(name="a") + cond = np.array([True, False, True, True]) + other = cls._from_sequence([a, b, a, b], dtype=data.dtype) + if as_frame: + other = pd.DataFrame({"a": other}) + cond = pd.DataFrame({"a": cond}) + result = ser.where(cond, other) + expected = pd.Series(cls._from_sequence([a, b, b, b], dtype=data.dtype)) + if as_frame: + expected = expected.to_frame(name="a") + tm.assert_equal(result, expected) + + ser.mask(~cond, other, inplace=True) + tm.assert_equal(ser, expected) + + @pytest.mark.parametrize("repeats", [0, 1, 2, [1, 2, 3]]) + def test_repeat(self, data, repeats, as_series, use_numpy): + arr = type(data)._from_sequence(data[:3], dtype=data.dtype) + if as_series: + arr = pd.Series(arr) + + result = np.repeat(arr, repeats) if use_numpy else arr.repeat(repeats) + + repeats = [repeats] * 3 if isinstance(repeats, int) else repeats + expected = [x for x, n in zip(arr, repeats) for _ in range(n)] + expected = type(data)._from_sequence(expected, dtype=data.dtype) + if as_series: + expected = pd.Series(expected, index=arr.index.repeat(repeats)) + + tm.assert_equal(result, expected) + + @pytest.mark.parametrize( + "repeats, kwargs, error, msg", + [ + (2, {"axis": 1}, ValueError, "axis"), + (-1, {}, ValueError, "negative"), + ([1, 2], {}, ValueError, "shape"), + (2, {"foo": "bar"}, TypeError, "'foo'"), + ], + ) + def test_repeat_raises(self, data, repeats, kwargs, error, msg, use_numpy): + with pytest.raises(error, match=msg): + if use_numpy: + np.repeat(data, repeats, **kwargs) + else: + data.repeat(repeats, **kwargs) + + def test_delete(self, data): + result = data.delete(0) + expected = data[1:] + tm.assert_extension_array_equal(result, expected) + + result = data.delete([1, 3]) + expected = data._concat_same_type([data[[0]], data[[2]], data[4:]]) + tm.assert_extension_array_equal(result, expected) + + def test_insert(self, data): + # insert at the beginning + result = data[1:].insert(0, data[0]) + tm.assert_extension_array_equal(result, data) + + result = data[1:].insert(-len(data[1:]), data[0]) + tm.assert_extension_array_equal(result, data) + + # insert at the middle + result = data[:-1].insert(4, data[-1]) + + taker = np.arange(len(data)) + taker[5:] = taker[4:-1] + taker[4] = len(data) - 1 + expected = data.take(taker) + tm.assert_extension_array_equal(result, expected) + + def test_insert_invalid(self, data, invalid_scalar): + item = invalid_scalar + + with pytest.raises((TypeError, ValueError)): + data.insert(0, item) + + with pytest.raises((TypeError, ValueError)): + data.insert(4, item) + + with pytest.raises((TypeError, ValueError)): + data.insert(len(data) - 1, item) + + def test_insert_invalid_loc(self, data): + ub = len(data) + + with pytest.raises(IndexError): + data.insert(ub + 1, data[0]) + + with pytest.raises(IndexError): + data.insert(-ub - 1, data[0]) + + with pytest.raises(TypeError): + # we expect TypeError here instead of IndexError to match np.insert + data.insert(1.5, data[0]) + + @pytest.mark.parametrize("box", [pd.array, pd.Series, pd.DataFrame]) + def test_equals(self, data, na_value, as_series, box): + data2 = type(data)._from_sequence([data[0]] * len(data), dtype=data.dtype) + data_na = type(data)._from_sequence([na_value] * len(data), dtype=data.dtype) + + data = tm.box_expected(data, box, transpose=False) + data2 = tm.box_expected(data2, box, transpose=False) + data_na = tm.box_expected(data_na, box, transpose=False) + + # we are asserting with `is True/False` explicitly, to test that the + # result is an actual Python bool, and not something "truthy" + + assert data.equals(data) is True + assert data.equals(data.copy()) is True + + # unequal other data + assert data.equals(data2) is False + assert data.equals(data_na) is False + + # different length + assert data[:2].equals(data[:3]) is False + + # empty are equal + assert data[:0].equals(data[:0]) is True + + # other types + assert data.equals(None) is False + assert data[[0]].equals(data[0]) is False + + def test_equals_same_data_different_object(self, data): + # https://github.com/pandas-dev/pandas/issues/34660 + assert pd.Series(data).equals(pd.Series(data)) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/missing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/missing.py new file mode 100644 index 0000000000000000000000000000000000000000..fb15b2dec869c7d311ddf0b52d13de4e66078dbc --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/missing.py @@ -0,0 +1,190 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm + + +class BaseMissingTests: + def test_isna(self, data_missing): + expected = np.array([True, False]) + + result = pd.isna(data_missing) + tm.assert_numpy_array_equal(result, expected) + + result = pd.Series(data_missing).isna() + expected = pd.Series(expected) + tm.assert_series_equal(result, expected) + + # GH 21189 + result = pd.Series(data_missing).drop([0, 1]).isna() + expected = pd.Series([], dtype=bool) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("na_func", ["isna", "notna"]) + def test_isna_returns_copy(self, data_missing, na_func): + result = pd.Series(data_missing) + expected = result.copy() + mask = getattr(result, na_func)() + if isinstance(mask.dtype, pd.SparseDtype): + # TODO: GH 57739 + mask = np.array(mask) + mask.flags.writeable = True + + mask[:] = True + tm.assert_series_equal(result, expected) + + def test_dropna_array(self, data_missing): + result = data_missing.dropna() + expected = data_missing[[1]] + tm.assert_extension_array_equal(result, expected) + + def test_dropna_series(self, data_missing): + ser = pd.Series(data_missing) + result = ser.dropna() + expected = ser.iloc[[1]] + tm.assert_series_equal(result, expected) + + def test_dropna_frame(self, data_missing): + df = pd.DataFrame({"A": data_missing}, columns=pd.Index(["A"], dtype=object)) + + # defaults + result = df.dropna() + expected = df.iloc[[1]] + tm.assert_frame_equal(result, expected) + + # axis = 1 + result = df.dropna(axis="columns") + expected = pd.DataFrame(index=pd.RangeIndex(2), columns=pd.Index([])) + tm.assert_frame_equal(result, expected) + + # multiple + df = pd.DataFrame({"A": data_missing, "B": [1, np.nan]}) + result = df.dropna() + expected = df.iloc[:0] + tm.assert_frame_equal(result, expected) + + def test_fillna_scalar(self, data_missing): + valid = data_missing[1] + result = data_missing.fillna(valid) + expected = data_missing.fillna(valid) + tm.assert_extension_array_equal(result, expected) + + @pytest.mark.filterwarnings( + "ignore:Series.fillna with 'method' is deprecated:FutureWarning" + ) + def test_fillna_limit_pad(self, data_missing): + arr = data_missing.take([1, 0, 0, 0, 1]) + result = pd.Series(arr).ffill(limit=2) + expected = pd.Series(data_missing.take([1, 1, 1, 0, 1])) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize( + "limit_area, input_ilocs, expected_ilocs", + [ + ("outside", [1, 0, 0, 0, 1], [1, 0, 0, 0, 1]), + ("outside", [1, 0, 1, 0, 1], [1, 0, 1, 0, 1]), + ("outside", [0, 1, 1, 1, 0], [0, 1, 1, 1, 1]), + ("outside", [0, 1, 0, 1, 0], [0, 1, 0, 1, 1]), + ("inside", [1, 0, 0, 0, 1], [1, 1, 1, 1, 1]), + ("inside", [1, 0, 1, 0, 1], [1, 1, 1, 1, 1]), + ("inside", [0, 1, 1, 1, 0], [0, 1, 1, 1, 0]), + ("inside", [0, 1, 0, 1, 0], [0, 1, 1, 1, 0]), + ], + ) + def test_ffill_limit_area( + self, data_missing, limit_area, input_ilocs, expected_ilocs + ): + # GH#56616 + arr = data_missing.take(input_ilocs) + result = pd.Series(arr).ffill(limit_area=limit_area) + expected = pd.Series(data_missing.take(expected_ilocs)) + tm.assert_series_equal(result, expected) + + @pytest.mark.filterwarnings( + "ignore:Series.fillna with 'method' is deprecated:FutureWarning" + ) + def test_fillna_limit_backfill(self, data_missing): + arr = data_missing.take([1, 0, 0, 0, 1]) + result = pd.Series(arr).fillna(method="backfill", limit=2) + expected = pd.Series(data_missing.take([1, 0, 1, 1, 1])) + tm.assert_series_equal(result, expected) + + def test_fillna_no_op_returns_copy(self, data): + data = data[~data.isna()] + + valid = data[0] + result = data.fillna(valid) + assert result is not data + tm.assert_extension_array_equal(result, data) + + result = data._pad_or_backfill(method="backfill") + assert result is not data + tm.assert_extension_array_equal(result, data) + + def test_fillna_series(self, data_missing): + fill_value = data_missing[1] + ser = pd.Series(data_missing) + + result = ser.fillna(fill_value) + expected = pd.Series( + data_missing._from_sequence( + [fill_value, fill_value], dtype=data_missing.dtype + ) + ) + tm.assert_series_equal(result, expected) + + # Fill with a series + result = ser.fillna(expected) + tm.assert_series_equal(result, expected) + + # Fill with a series not affecting the missing values + result = ser.fillna(ser) + tm.assert_series_equal(result, ser) + + def test_fillna_series_method(self, data_missing, fillna_method): + fill_value = data_missing[1] + + if fillna_method == "ffill": + data_missing = data_missing[::-1] + + result = getattr(pd.Series(data_missing), fillna_method)() + expected = pd.Series( + data_missing._from_sequence( + [fill_value, fill_value], dtype=data_missing.dtype + ) + ) + + tm.assert_series_equal(result, expected) + + def test_fillna_frame(self, data_missing): + fill_value = data_missing[1] + + result = pd.DataFrame({"A": data_missing, "B": [1, 2]}).fillna(fill_value) + + expected = pd.DataFrame( + { + "A": data_missing._from_sequence( + [fill_value, fill_value], dtype=data_missing.dtype + ), + "B": [1, 2], + } + ) + + tm.assert_frame_equal(result, expected) + + def test_fillna_fill_other(self, data): + result = pd.DataFrame({"A": data, "B": [np.nan] * len(data)}).fillna({"B": 0.0}) + + expected = pd.DataFrame({"A": data, "B": [0.0] * len(result)}) + + tm.assert_frame_equal(result, expected) + + def test_use_inf_as_na_no_effect(self, data_missing): + ser = pd.Series(data_missing) + expected = ser.isna() + msg = "use_inf_as_na option is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + with pd.option_context("mode.use_inf_as_na", True): + result = ser.isna() + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/ops.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/ops.py new file mode 100644 index 0000000000000000000000000000000000000000..222ff42d4505260c751166d93e1590344787bb79 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/ops.py @@ -0,0 +1,289 @@ +from __future__ import annotations + +from typing import final + +import numpy as np +import pytest + +from pandas.core.dtypes.common import is_string_dtype + +import pandas as pd +import pandas._testing as tm +from pandas.core import ops + + +class BaseOpsUtil: + series_scalar_exc: type[Exception] | None = TypeError + frame_scalar_exc: type[Exception] | None = TypeError + series_array_exc: type[Exception] | None = TypeError + divmod_exc: type[Exception] | None = TypeError + + def _get_expected_exception( + self, op_name: str, obj, other + ) -> type[Exception] | tuple[type[Exception], ...] | None: + # Find the Exception, if any we expect to raise calling + # obj.__op_name__(other) + + # The self.obj_bar_exc pattern isn't great in part because it can depend + # on op_name or dtypes, but we use it here for backward-compatibility. + if op_name in ["__divmod__", "__rdivmod__"]: + result = self.divmod_exc + elif isinstance(obj, pd.Series) and isinstance(other, pd.Series): + result = self.series_array_exc + elif isinstance(obj, pd.Series): + result = self.series_scalar_exc + else: + result = self.frame_scalar_exc + + return result + + def _cast_pointwise_result(self, op_name: str, obj, other, pointwise_result): + # In _check_op we check that the result of a pointwise operation + # (found via _combine) matches the result of the vectorized + # operation obj.__op_name__(other). + # In some cases pandas dtype inference on the scalar result may not + # give a matching dtype even if both operations are behaving "correctly". + # In these cases, do extra required casting here. + return pointwise_result + + def get_op_from_name(self, op_name: str): + return tm.get_op_from_name(op_name) + + # Subclasses are not expected to need to override check_opname, _check_op, + # _check_divmod_op, or _combine. + # Ideally any relevant overriding can be done in _cast_pointwise_result, + # get_op_from_name, and the specification of `exc`. If you find a use + # case that still requires overriding _check_op or _combine, please let + # us know at github.com/pandas-dev/pandas/issues + @final + def check_opname(self, ser: pd.Series, op_name: str, other): + exc = self._get_expected_exception(op_name, ser, other) + op = self.get_op_from_name(op_name) + + self._check_op(ser, op, other, op_name, exc) + + # see comment on check_opname + @final + def _combine(self, obj, other, op): + if isinstance(obj, pd.DataFrame): + if len(obj.columns) != 1: + raise NotImplementedError + expected = obj.iloc[:, 0].combine(other, op).to_frame() + else: + expected = obj.combine(other, op) + return expected + + # see comment on check_opname + @final + def _check_op( + self, ser: pd.Series, op, other, op_name: str, exc=NotImplementedError + ): + # Check that the Series/DataFrame arithmetic/comparison method matches + # the pointwise result from _combine. + + if exc is None: + result = op(ser, other) + expected = self._combine(ser, other, op) + expected = self._cast_pointwise_result(op_name, ser, other, expected) + assert isinstance(result, type(ser)) + tm.assert_equal(result, expected) + else: + with pytest.raises(exc): + op(ser, other) + + # see comment on check_opname + @final + def _check_divmod_op(self, ser: pd.Series, op, other): + # check that divmod behavior matches behavior of floordiv+mod + if op is divmod: + exc = self._get_expected_exception("__divmod__", ser, other) + else: + exc = self._get_expected_exception("__rdivmod__", ser, other) + if exc is None: + result_div, result_mod = op(ser, other) + if op is divmod: + expected_div, expected_mod = ser // other, ser % other + else: + expected_div, expected_mod = other // ser, other % ser + tm.assert_series_equal(result_div, expected_div) + tm.assert_series_equal(result_mod, expected_mod) + else: + with pytest.raises(exc): + divmod(ser, other) + + +class BaseArithmeticOpsTests(BaseOpsUtil): + """ + Various Series and DataFrame arithmetic ops methods. + + Subclasses supporting various ops should set the class variables + to indicate that they support ops of that kind + + * series_scalar_exc = TypeError + * frame_scalar_exc = TypeError + * series_array_exc = TypeError + * divmod_exc = TypeError + """ + + series_scalar_exc: type[Exception] | None = TypeError + frame_scalar_exc: type[Exception] | None = TypeError + series_array_exc: type[Exception] | None = TypeError + divmod_exc: type[Exception] | None = TypeError + + def test_arith_series_with_scalar(self, data, all_arithmetic_operators): + # series & scalar + if all_arithmetic_operators == "__rmod__" and is_string_dtype(data.dtype): + pytest.skip("Skip testing Python string formatting") + + op_name = all_arithmetic_operators + ser = pd.Series(data) + self.check_opname(ser, op_name, ser.iloc[0]) + + def test_arith_frame_with_scalar(self, data, all_arithmetic_operators): + # frame & scalar + if all_arithmetic_operators == "__rmod__" and is_string_dtype(data.dtype): + pytest.skip("Skip testing Python string formatting") + + op_name = all_arithmetic_operators + df = pd.DataFrame({"A": data}) + self.check_opname(df, op_name, data[0]) + + def test_arith_series_with_array(self, data, all_arithmetic_operators): + # ndarray & other series + op_name = all_arithmetic_operators + ser = pd.Series(data) + self.check_opname(ser, op_name, pd.Series([ser.iloc[0]] * len(ser))) + + def test_divmod(self, data): + ser = pd.Series(data) + self._check_divmod_op(ser, divmod, 1) + self._check_divmod_op(1, ops.rdivmod, ser) + + def test_divmod_series_array(self, data, data_for_twos): + ser = pd.Series(data) + self._check_divmod_op(ser, divmod, data) + + other = data_for_twos + self._check_divmod_op(other, ops.rdivmod, ser) + + other = pd.Series(other) + self._check_divmod_op(other, ops.rdivmod, ser) + + def test_add_series_with_extension_array(self, data): + # Check adding an ExtensionArray to a Series of the same dtype matches + # the behavior of adding the arrays directly and then wrapping in a + # Series. + + ser = pd.Series(data) + + exc = self._get_expected_exception("__add__", ser, data) + if exc is not None: + with pytest.raises(exc): + ser + data + return + + result = ser + data + expected = pd.Series(data + data) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("box", [pd.Series, pd.DataFrame, pd.Index]) + @pytest.mark.parametrize( + "op_name", + [ + x + for x in tm.arithmetic_dunder_methods + tm.comparison_dunder_methods + if not x.startswith("__r") + ], + ) + def test_direct_arith_with_ndframe_returns_not_implemented( + self, data, box, op_name + ): + # EAs should return NotImplemented for ops with Series/DataFrame/Index + # Pandas takes care of unboxing the series and calling the EA's op. + other = box(data) + + if hasattr(data, op_name): + result = getattr(data, op_name)(other) + assert result is NotImplemented + + +class BaseComparisonOpsTests(BaseOpsUtil): + """Various Series and DataFrame comparison ops methods.""" + + def _compare_other(self, ser: pd.Series, data, op, other): + if op.__name__ in ["eq", "ne"]: + # comparison should match point-wise comparisons + result = op(ser, other) + expected = ser.combine(other, op) + expected = self._cast_pointwise_result(op.__name__, ser, other, expected) + tm.assert_series_equal(result, expected) + + else: + exc = None + try: + result = op(ser, other) + except Exception as err: + exc = err + + if exc is None: + # Didn't error, then should match pointwise behavior + expected = ser.combine(other, op) + expected = self._cast_pointwise_result( + op.__name__, ser, other, expected + ) + tm.assert_series_equal(result, expected) + else: + with pytest.raises(type(exc)): + ser.combine(other, op) + + def test_compare_scalar(self, data, comparison_op): + ser = pd.Series(data) + self._compare_other(ser, data, comparison_op, 0) + + def test_compare_array(self, data, comparison_op): + ser = pd.Series(data) + other = pd.Series([data[0]] * len(data), dtype=data.dtype) + self._compare_other(ser, data, comparison_op, other) + + +class BaseUnaryOpsTests(BaseOpsUtil): + def test_invert(self, data): + ser = pd.Series(data, name="name") + try: + # 10 is an arbitrary choice here, just avoid iterating over + # the whole array to trim test runtime + [~x for x in data[:10]] + except TypeError: + # scalars don't support invert -> we don't expect the vectorized + # operation to succeed + with pytest.raises(TypeError): + ~ser + with pytest.raises(TypeError): + ~data + else: + # Note we do not reuse the pointwise result to construct expected + # because python semantics for negating bools are weird see GH#54569 + result = ~ser + expected = pd.Series(~data, name="name") + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("ufunc", [np.positive, np.negative, np.abs]) + def test_unary_ufunc_dunder_equivalence(self, data, ufunc): + # the dunder __pos__ works if and only if np.positive works, + # same for __neg__/np.negative and __abs__/np.abs + attr = {np.positive: "__pos__", np.negative: "__neg__", np.abs: "__abs__"}[ + ufunc + ] + + exc = None + try: + result = getattr(data, attr)() + except Exception as err: + exc = err + + # if __pos__ raised, then so should the ufunc + with pytest.raises((type(exc), TypeError)): + ufunc(data) + else: + alt = ufunc(data) + tm.assert_extension_array_equal(result, alt) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/printing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/printing.py new file mode 100644 index 0000000000000000000000000000000000000000..b20236ec107b04a09238c472a1d7172256334d3b --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/printing.py @@ -0,0 +1,41 @@ +import io + +import pytest + +import pandas as pd + + +class BasePrintingTests: + """Tests checking the formatting of your EA when printed.""" + + @pytest.mark.parametrize("size", ["big", "small"]) + def test_array_repr(self, data, size): + if size == "small": + data = data[:5] + else: + data = type(data)._concat_same_type([data] * 5) + + result = repr(data) + assert type(data).__name__ in result + assert f"Length: {len(data)}" in result + assert str(data.dtype) in result + if size == "big": + assert "..." in result + + def test_array_repr_unicode(self, data): + result = str(data) + assert isinstance(result, str) + + def test_series_repr(self, data): + ser = pd.Series(data) + assert data.dtype.name in repr(ser) + + def test_dataframe_repr(self, data): + df = pd.DataFrame({"A": data}) + repr(df) + + def test_dtype_name_in_info(self, data): + buf = io.StringIO() + pd.DataFrame({"A": data}).info(buf=buf) + result = buf.getvalue() + assert data.dtype.name in result diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/reduce.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/reduce.py new file mode 100644 index 0000000000000000000000000000000000000000..6ea1b3a6fbe9da36e430c26b7ce7bcb706464108 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/reduce.py @@ -0,0 +1,153 @@ +from typing import final + +import pytest + +import pandas as pd +import pandas._testing as tm +from pandas.api.types import is_numeric_dtype + + +class BaseReduceTests: + """ + Reduction specific tests. Generally these only + make sense for numeric/boolean operations. + """ + + def _supports_reduction(self, ser: pd.Series, op_name: str) -> bool: + # Specify if we expect this reduction to succeed. + return False + + def check_reduce(self, ser: pd.Series, op_name: str, skipna: bool): + # We perform the same operation on the np.float64 data and check + # that the results match. Override if you need to cast to something + # other than float64. + res_op = getattr(ser, op_name) + + try: + alt = ser.astype("float64") + except (TypeError, ValueError): + # e.g. Interval can't cast (TypeError), StringArray can't cast + # (ValueError), so let's cast to object and do + # the reduction pointwise + alt = ser.astype(object) + + exp_op = getattr(alt, op_name) + if op_name == "count": + result = res_op() + expected = exp_op() + else: + result = res_op(skipna=skipna) + expected = exp_op(skipna=skipna) + tm.assert_almost_equal(result, expected) + + def _get_expected_reduction_dtype(self, arr, op_name: str, skipna: bool): + # Find the expected dtype when the given reduction is done on a DataFrame + # column with this array. The default assumes float64-like behavior, + # i.e. retains the dtype. + return arr.dtype + + # We anticipate that authors should not need to override check_reduce_frame, + # but should be able to do any necessary overriding in + # _get_expected_reduction_dtype. If you have a use case where this + # does not hold, please let us know at github.com/pandas-dev/pandas/issues. + @final + def check_reduce_frame(self, ser: pd.Series, op_name: str, skipna: bool): + # Check that the 2D reduction done in a DataFrame reduction "looks like" + # a wrapped version of the 1D reduction done by Series. + arr = ser.array + df = pd.DataFrame({"a": arr}) + + kwargs = {"ddof": 1} if op_name in ["var", "std"] else {} + + cmp_dtype = self._get_expected_reduction_dtype(arr, op_name, skipna) + + # The DataFrame method just calls arr._reduce with keepdims=True, + # so this first check is perfunctory. + result1 = arr._reduce(op_name, skipna=skipna, keepdims=True, **kwargs) + result2 = getattr(df, op_name)(skipna=skipna, **kwargs).array + tm.assert_extension_array_equal(result1, result2) + + # Check that the 2D reduction looks like a wrapped version of the + # 1D reduction + if not skipna and ser.isna().any(): + expected = pd.array([pd.NA], dtype=cmp_dtype) + else: + exp_value = getattr(ser.dropna(), op_name)() + expected = pd.array([exp_value], dtype=cmp_dtype) + + tm.assert_extension_array_equal(result1, expected) + + @pytest.mark.parametrize("skipna", [True, False]) + def test_reduce_series_boolean(self, data, all_boolean_reductions, skipna): + op_name = all_boolean_reductions + ser = pd.Series(data) + + if not self._supports_reduction(ser, op_name): + # TODO: the message being checked here isn't actually checking anything + msg = ( + "[Cc]annot perform|Categorical is not ordered for operation|" + "does not support reduction|" + ) + + with pytest.raises(TypeError, match=msg): + getattr(ser, op_name)(skipna=skipna) + + else: + self.check_reduce(ser, op_name, skipna) + + @pytest.mark.filterwarnings("ignore::RuntimeWarning") + @pytest.mark.parametrize("skipna", [True, False]) + def test_reduce_series_numeric(self, data, all_numeric_reductions, skipna): + op_name = all_numeric_reductions + ser = pd.Series(data) + + if not self._supports_reduction(ser, op_name): + # TODO: the message being checked here isn't actually checking anything + msg = ( + "[Cc]annot perform|Categorical is not ordered for operation|" + "does not support reduction|" + ) + + with pytest.raises(TypeError, match=msg): + getattr(ser, op_name)(skipna=skipna) + + else: + # min/max with empty produce numpy warnings + self.check_reduce(ser, op_name, skipna) + + @pytest.mark.parametrize("skipna", [True, False]) + def test_reduce_frame(self, data, all_numeric_reductions, skipna): + op_name = all_numeric_reductions + ser = pd.Series(data) + if not is_numeric_dtype(ser.dtype): + pytest.skip(f"{ser.dtype} is not numeric dtype") + + if op_name in ["count", "kurt", "sem"]: + pytest.skip(f"{op_name} not an array method") + + if not self._supports_reduction(ser, op_name): + pytest.skip(f"Reduction {op_name} not supported for this dtype") + + self.check_reduce_frame(ser, op_name, skipna) + + +# TODO(3.0): remove BaseNoReduceTests, BaseNumericReduceTests, +# BaseBooleanReduceTests +class BaseNoReduceTests(BaseReduceTests): + """we don't define any reductions""" + + +class BaseNumericReduceTests(BaseReduceTests): + # For backward compatibility only, this only runs the numeric reductions + def _supports_reduction(self, ser: pd.Series, op_name: str) -> bool: + if op_name in ["any", "all"]: + pytest.skip("These are tested in BaseBooleanReduceTests") + return True + + +class BaseBooleanReduceTests(BaseReduceTests): + # For backward compatibility only, this only runs the numeric reductions + def _supports_reduction(self, ser: pd.Series, op_name: str) -> bool: + if op_name not in ["any", "all"]: + pytest.skip("These are tested in BaseNumericReduceTests") + return True diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/reshaping.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/reshaping.py new file mode 100644 index 0000000000000000000000000000000000000000..4550e3b055cfeaea60f9d0b44c97e099e8e4d47c --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/reshaping.py @@ -0,0 +1,379 @@ +import itertools + +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm +from pandas.api.extensions import ExtensionArray +from pandas.core.internals.blocks import EABackedBlock + + +class BaseReshapingTests: + """Tests for reshaping and concatenation.""" + + @pytest.mark.parametrize("in_frame", [True, False]) + def test_concat(self, data, in_frame): + wrapped = pd.Series(data) + if in_frame: + wrapped = pd.DataFrame(wrapped) + result = pd.concat([wrapped, wrapped], ignore_index=True) + + assert len(result) == len(data) * 2 + + if in_frame: + dtype = result.dtypes[0] + else: + dtype = result.dtype + + assert dtype == data.dtype + if hasattr(result._mgr, "blocks"): + assert isinstance(result._mgr.blocks[0], EABackedBlock) + assert isinstance(result._mgr.arrays[0], ExtensionArray) + + @pytest.mark.parametrize("in_frame", [True, False]) + def test_concat_all_na_block(self, data_missing, in_frame): + valid_block = pd.Series(data_missing.take([1, 1]), index=[0, 1]) + na_block = pd.Series(data_missing.take([0, 0]), index=[2, 3]) + if in_frame: + valid_block = pd.DataFrame({"a": valid_block}) + na_block = pd.DataFrame({"a": na_block}) + result = pd.concat([valid_block, na_block]) + if in_frame: + expected = pd.DataFrame({"a": data_missing.take([1, 1, 0, 0])}) + tm.assert_frame_equal(result, expected) + else: + expected = pd.Series(data_missing.take([1, 1, 0, 0])) + tm.assert_series_equal(result, expected) + + def test_concat_mixed_dtypes(self, data): + # https://github.com/pandas-dev/pandas/issues/20762 + df1 = pd.DataFrame({"A": data[:3]}) + df2 = pd.DataFrame({"A": [1, 2, 3]}) + df3 = pd.DataFrame({"A": ["a", "b", "c"]}).astype("category") + dfs = [df1, df2, df3] + + # dataframes + result = pd.concat(dfs) + expected = pd.concat([x.astype(object) for x in dfs]) + tm.assert_frame_equal(result, expected) + + # series + result = pd.concat([x["A"] for x in dfs]) + expected = pd.concat([x["A"].astype(object) for x in dfs]) + tm.assert_series_equal(result, expected) + + # simple test for just EA and one other + result = pd.concat([df1, df2.astype(object)]) + expected = pd.concat([df1.astype("object"), df2.astype("object")]) + tm.assert_frame_equal(result, expected) + + result = pd.concat([df1["A"], df2["A"].astype(object)]) + expected = pd.concat([df1["A"].astype("object"), df2["A"].astype("object")]) + tm.assert_series_equal(result, expected) + + def test_concat_columns(self, data, na_value): + df1 = pd.DataFrame({"A": data[:3]}) + df2 = pd.DataFrame({"B": [1, 2, 3]}) + + expected = pd.DataFrame({"A": data[:3], "B": [1, 2, 3]}) + result = pd.concat([df1, df2], axis=1) + tm.assert_frame_equal(result, expected) + result = pd.concat([df1["A"], df2["B"]], axis=1) + tm.assert_frame_equal(result, expected) + + # non-aligned + df2 = pd.DataFrame({"B": [1, 2, 3]}, index=[1, 2, 3]) + expected = pd.DataFrame( + { + "A": data._from_sequence(list(data[:3]) + [na_value], dtype=data.dtype), + "B": [np.nan, 1, 2, 3], + } + ) + + result = pd.concat([df1, df2], axis=1) + tm.assert_frame_equal(result, expected) + result = pd.concat([df1["A"], df2["B"]], axis=1) + tm.assert_frame_equal(result, expected) + + def test_concat_extension_arrays_copy_false(self, data, na_value): + # GH 20756 + df1 = pd.DataFrame({"A": data[:3]}) + df2 = pd.DataFrame({"B": data[3:7]}) + expected = pd.DataFrame( + { + "A": data._from_sequence(list(data[:3]) + [na_value], dtype=data.dtype), + "B": data[3:7], + } + ) + result = pd.concat([df1, df2], axis=1, copy=False) + tm.assert_frame_equal(result, expected) + + def test_concat_with_reindex(self, data): + # GH-33027 + a = pd.DataFrame({"a": data[:5]}) + b = pd.DataFrame({"b": data[:5]}) + result = pd.concat([a, b], ignore_index=True) + expected = pd.DataFrame( + { + "a": data.take(list(range(5)) + ([-1] * 5), allow_fill=True), + "b": data.take(([-1] * 5) + list(range(5)), allow_fill=True), + } + ) + tm.assert_frame_equal(result, expected) + + def test_align(self, data, na_value): + a = data[:3] + b = data[2:5] + r1, r2 = pd.Series(a).align(pd.Series(b, index=[1, 2, 3])) + + # Assumes that the ctor can take a list of scalars of the type + e1 = pd.Series(data._from_sequence(list(a) + [na_value], dtype=data.dtype)) + e2 = pd.Series(data._from_sequence([na_value] + list(b), dtype=data.dtype)) + tm.assert_series_equal(r1, e1) + tm.assert_series_equal(r2, e2) + + def test_align_frame(self, data, na_value): + a = data[:3] + b = data[2:5] + r1, r2 = pd.DataFrame({"A": a}).align(pd.DataFrame({"A": b}, index=[1, 2, 3])) + + # Assumes that the ctor can take a list of scalars of the type + e1 = pd.DataFrame( + {"A": data._from_sequence(list(a) + [na_value], dtype=data.dtype)} + ) + e2 = pd.DataFrame( + {"A": data._from_sequence([na_value] + list(b), dtype=data.dtype)} + ) + tm.assert_frame_equal(r1, e1) + tm.assert_frame_equal(r2, e2) + + def test_align_series_frame(self, data, na_value): + # https://github.com/pandas-dev/pandas/issues/20576 + ser = pd.Series(data, name="a") + df = pd.DataFrame({"col": np.arange(len(ser) + 1)}) + r1, r2 = ser.align(df) + + e1 = pd.Series( + data._from_sequence(list(data) + [na_value], dtype=data.dtype), + name=ser.name, + ) + + tm.assert_series_equal(r1, e1) + tm.assert_frame_equal(r2, df) + + def test_set_frame_expand_regular_with_extension(self, data): + df = pd.DataFrame({"A": [1] * len(data)}) + df["B"] = data + expected = pd.DataFrame({"A": [1] * len(data), "B": data}) + tm.assert_frame_equal(df, expected) + + def test_set_frame_expand_extension_with_regular(self, data): + df = pd.DataFrame({"A": data}) + df["B"] = [1] * len(data) + expected = pd.DataFrame({"A": data, "B": [1] * len(data)}) + tm.assert_frame_equal(df, expected) + + def test_set_frame_overwrite_object(self, data): + # https://github.com/pandas-dev/pandas/issues/20555 + df = pd.DataFrame({"A": [1] * len(data)}, dtype=object) + df["A"] = data + assert df.dtypes["A"] == data.dtype + + def test_merge(self, data, na_value): + # GH-20743 + df1 = pd.DataFrame({"ext": data[:3], "int1": [1, 2, 3], "key": [0, 1, 2]}) + df2 = pd.DataFrame({"int2": [1, 2, 3, 4], "key": [0, 0, 1, 3]}) + + res = pd.merge(df1, df2) + exp = pd.DataFrame( + { + "int1": [1, 1, 2], + "int2": [1, 2, 3], + "key": [0, 0, 1], + "ext": data._from_sequence( + [data[0], data[0], data[1]], dtype=data.dtype + ), + } + ) + tm.assert_frame_equal(res, exp[["ext", "int1", "key", "int2"]]) + + res = pd.merge(df1, df2, how="outer") + exp = pd.DataFrame( + { + "int1": [1, 1, 2, 3, np.nan], + "int2": [1, 2, 3, np.nan, 4], + "key": [0, 0, 1, 2, 3], + "ext": data._from_sequence( + [data[0], data[0], data[1], data[2], na_value], dtype=data.dtype + ), + } + ) + tm.assert_frame_equal(res, exp[["ext", "int1", "key", "int2"]]) + + def test_merge_on_extension_array(self, data): + # GH 23020 + a, b = data[:2] + key = type(data)._from_sequence([a, b], dtype=data.dtype) + + df = pd.DataFrame({"key": key, "val": [1, 2]}) + result = pd.merge(df, df, on="key") + expected = pd.DataFrame({"key": key, "val_x": [1, 2], "val_y": [1, 2]}) + tm.assert_frame_equal(result, expected) + + # order + result = pd.merge(df.iloc[[1, 0]], df, on="key") + expected = expected.iloc[[1, 0]].reset_index(drop=True) + tm.assert_frame_equal(result, expected) + + def test_merge_on_extension_array_duplicates(self, data): + # GH 23020 + a, b = data[:2] + key = type(data)._from_sequence([a, b, a], dtype=data.dtype) + df1 = pd.DataFrame({"key": key, "val": [1, 2, 3]}) + df2 = pd.DataFrame({"key": key, "val": [1, 2, 3]}) + + result = pd.merge(df1, df2, on="key") + expected = pd.DataFrame( + { + "key": key.take([0, 0, 1, 2, 2]), + "val_x": [1, 1, 2, 3, 3], + "val_y": [1, 3, 2, 1, 3], + } + ) + tm.assert_frame_equal(result, expected) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + @pytest.mark.parametrize( + "columns", + [ + ["A", "B"], + pd.MultiIndex.from_tuples( + [("A", "a"), ("A", "b")], names=["outer", "inner"] + ), + ], + ) + @pytest.mark.parametrize("future_stack", [True, False]) + def test_stack(self, data, columns, future_stack): + df = pd.DataFrame({"A": data[:5], "B": data[:5]}) + df.columns = columns + result = df.stack(future_stack=future_stack) + expected = df.astype(object).stack(future_stack=future_stack) + # we need a second astype(object), in case the constructor inferred + # object -> specialized, as is done for period. + expected = expected.astype(object) + + if isinstance(expected, pd.Series): + assert result.dtype == df.iloc[:, 0].dtype + else: + assert all(result.dtypes == df.iloc[:, 0].dtype) + + result = result.astype(object) + tm.assert_equal(result, expected) + + @pytest.mark.parametrize( + "index", + [ + # Two levels, uniform. + pd.MultiIndex.from_product(([["A", "B"], ["a", "b"]]), names=["a", "b"]), + # non-uniform + pd.MultiIndex.from_tuples([("A", "a"), ("A", "b"), ("B", "b")]), + # three levels, non-uniform + pd.MultiIndex.from_product([("A", "B"), ("a", "b", "c"), (0, 1, 2)]), + pd.MultiIndex.from_tuples( + [ + ("A", "a", 1), + ("A", "b", 0), + ("A", "a", 0), + ("B", "a", 0), + ("B", "c", 1), + ] + ), + ], + ) + @pytest.mark.parametrize("obj", ["series", "frame"]) + def test_unstack(self, data, index, obj): + data = data[: len(index)] + if obj == "series": + ser = pd.Series(data, index=index) + else: + ser = pd.DataFrame({"A": data, "B": data}, index=index) + + n = index.nlevels + levels = list(range(n)) + # [0, 1, 2] + # [(0,), (1,), (2,), (0, 1), (0, 2), (1, 0), (1, 2), (2, 0), (2, 1)] + combinations = itertools.chain.from_iterable( + itertools.permutations(levels, i) for i in range(1, n) + ) + + for level in combinations: + result = ser.unstack(level=level) + assert all( + isinstance(result[col].array, type(data)) for col in result.columns + ) + + if obj == "series": + # We should get the same result with to_frame+unstack+droplevel + df = ser.to_frame() + + alt = df.unstack(level=level).droplevel(0, axis=1) + tm.assert_frame_equal(result, alt) + + obj_ser = ser.astype(object) + + expected = obj_ser.unstack(level=level, fill_value=data.dtype.na_value) + if obj == "series": + assert (expected.dtypes == object).all() + + result = result.astype(object) + tm.assert_frame_equal(result, expected) + + def test_ravel(self, data): + # as long as EA is 1D-only, ravel is a no-op + result = data.ravel() + assert type(result) == type(data) + + if data.dtype._is_immutable: + pytest.skip(f"test_ravel assumes mutability and {data.dtype} is immutable") + + # Check that we have a view, not a copy + result[0] = result[1] + assert data[0] == data[1] + + def test_transpose(self, data): + result = data.transpose() + assert type(result) == type(data) + + # check we get a new object + assert result is not data + + # If we ever _did_ support 2D, shape should be reversed + assert result.shape == data.shape[::-1] + + if data.dtype._is_immutable: + pytest.skip( + f"test_transpose assumes mutability and {data.dtype} is immutable" + ) + + # Check that we have a view, not a copy + result[0] = result[1] + assert data[0] == data[1] + + def test_transpose_frame(self, data): + df = pd.DataFrame({"A": data[:4], "B": data[:4]}, index=["a", "b", "c", "d"]) + result = df.T + expected = pd.DataFrame( + { + "a": type(data)._from_sequence([data[0]] * 2, dtype=data.dtype), + "b": type(data)._from_sequence([data[1]] * 2, dtype=data.dtype), + "c": type(data)._from_sequence([data[2]] * 2, dtype=data.dtype), + "d": type(data)._from_sequence([data[3]] * 2, dtype=data.dtype), + }, + index=["A", "B"], + ) + tm.assert_frame_equal(result, expected) + tm.assert_frame_equal(np.transpose(np.transpose(df)), df) + tm.assert_frame_equal(np.transpose(np.transpose(df[["A"]])), df[["A"]]) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/setitem.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/setitem.py new file mode 100644 index 0000000000000000000000000000000000000000..ca19845041e231f141d480ad57f668e4d6fcd5fc --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/base/setitem.py @@ -0,0 +1,451 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm + + +class BaseSetitemTests: + @pytest.fixture( + params=[ + lambda x: x.index, + lambda x: list(x.index), + lambda x: slice(None), + lambda x: slice(0, len(x)), + lambda x: range(len(x)), + lambda x: list(range(len(x))), + lambda x: np.ones(len(x), dtype=bool), + ], + ids=[ + "index", + "list[index]", + "null_slice", + "full_slice", + "range", + "list(range)", + "mask", + ], + ) + def full_indexer(self, request): + """ + Fixture for an indexer to pass to obj.loc to get/set the full length of the + object. + + In some cases, assumes that obj.index is the default RangeIndex. + """ + return request.param + + @pytest.fixture(autouse=True) + def skip_if_immutable(self, dtype, request): + if dtype._is_immutable: + node = request.node + if node.name.split("[")[0] == "test_is_immutable": + # This fixture is auto-used, but we want to not-skip + # test_is_immutable. + return + + # When BaseSetitemTests is mixed into ExtensionTests, we only + # want this fixture to operate on the tests defined in this + # class/file. + defined_in = node.function.__qualname__.split(".")[0] + if defined_in == "BaseSetitemTests": + pytest.skip("__setitem__ test not applicable with immutable dtype") + + def test_is_immutable(self, data): + if data.dtype._is_immutable: + with pytest.raises(TypeError): + data[0] = data[0] + else: + data[0] = data[1] + assert data[0] == data[1] + + def test_setitem_scalar_series(self, data, box_in_series): + if box_in_series: + data = pd.Series(data) + data[0] = data[1] + assert data[0] == data[1] + + def test_setitem_sequence(self, data, box_in_series): + if box_in_series: + data = pd.Series(data) + original = data.copy() + + data[[0, 1]] = [data[1], data[0]] + assert data[0] == original[1] + assert data[1] == original[0] + + def test_setitem_sequence_mismatched_length_raises(self, data, as_array): + ser = pd.Series(data) + original = ser.copy() + value = [data[0]] + if as_array: + value = data._from_sequence(value, dtype=data.dtype) + + xpr = "cannot set using a {} indexer with a different length" + with pytest.raises(ValueError, match=xpr.format("list-like")): + ser[[0, 1]] = value + # Ensure no modifications made before the exception + tm.assert_series_equal(ser, original) + + with pytest.raises(ValueError, match=xpr.format("slice")): + ser[slice(3)] = value + tm.assert_series_equal(ser, original) + + def test_setitem_empty_indexer(self, data, box_in_series): + if box_in_series: + data = pd.Series(data) + original = data.copy() + data[np.array([], dtype=int)] = [] + tm.assert_equal(data, original) + + def test_setitem_sequence_broadcasts(self, data, box_in_series): + if box_in_series: + data = pd.Series(data) + data[[0, 1]] = data[2] + assert data[0] == data[2] + assert data[1] == data[2] + + @pytest.mark.parametrize("setter", ["loc", "iloc"]) + def test_setitem_scalar(self, data, setter): + arr = pd.Series(data) + setter = getattr(arr, setter) + setter[0] = data[1] + assert arr[0] == data[1] + + def test_setitem_loc_scalar_mixed(self, data): + df = pd.DataFrame({"A": np.arange(len(data)), "B": data}) + df.loc[0, "B"] = data[1] + assert df.loc[0, "B"] == data[1] + + def test_setitem_loc_scalar_single(self, data): + df = pd.DataFrame({"B": data}) + df.loc[10, "B"] = data[1] + assert df.loc[10, "B"] == data[1] + + def test_setitem_loc_scalar_multiple_homogoneous(self, data): + df = pd.DataFrame({"A": data, "B": data}) + df.loc[10, "B"] = data[1] + assert df.loc[10, "B"] == data[1] + + def test_setitem_iloc_scalar_mixed(self, data): + df = pd.DataFrame({"A": np.arange(len(data)), "B": data}) + df.iloc[0, 1] = data[1] + assert df.loc[0, "B"] == data[1] + + def test_setitem_iloc_scalar_single(self, data): + df = pd.DataFrame({"B": data}) + df.iloc[10, 0] = data[1] + assert df.loc[10, "B"] == data[1] + + def test_setitem_iloc_scalar_multiple_homogoneous(self, data): + df = pd.DataFrame({"A": data, "B": data}) + df.iloc[10, 1] = data[1] + assert df.loc[10, "B"] == data[1] + + @pytest.mark.parametrize( + "mask", + [ + np.array([True, True, True, False, False]), + pd.array([True, True, True, False, False], dtype="boolean"), + pd.array([True, True, True, pd.NA, pd.NA], dtype="boolean"), + ], + ids=["numpy-array", "boolean-array", "boolean-array-na"], + ) + def test_setitem_mask(self, data, mask, box_in_series): + arr = data[:5].copy() + expected = arr.take([0, 0, 0, 3, 4]) + if box_in_series: + arr = pd.Series(arr) + expected = pd.Series(expected) + arr[mask] = data[0] + tm.assert_equal(expected, arr) + + def test_setitem_mask_raises(self, data, box_in_series): + # wrong length + mask = np.array([True, False]) + + if box_in_series: + data = pd.Series(data) + + with pytest.raises(IndexError, match="wrong length"): + data[mask] = data[0] + + mask = pd.array(mask, dtype="boolean") + with pytest.raises(IndexError, match="wrong length"): + data[mask] = data[0] + + def test_setitem_mask_boolean_array_with_na(self, data, box_in_series): + mask = pd.array(np.zeros(data.shape, dtype="bool"), dtype="boolean") + mask[:3] = True + mask[3:5] = pd.NA + + if box_in_series: + data = pd.Series(data) + + data[mask] = data[0] + + assert (data[:3] == data[0]).all() + + @pytest.mark.parametrize( + "idx", + [[0, 1, 2], pd.array([0, 1, 2], dtype="Int64"), np.array([0, 1, 2])], + ids=["list", "integer-array", "numpy-array"], + ) + def test_setitem_integer_array(self, data, idx, box_in_series): + arr = data[:5].copy() + expected = data.take([0, 0, 0, 3, 4]) + + if box_in_series: + arr = pd.Series(arr) + expected = pd.Series(expected) + + arr[idx] = arr[0] + tm.assert_equal(arr, expected) + + @pytest.mark.parametrize( + "idx, box_in_series", + [ + ([0, 1, 2, pd.NA], False), + pytest.param( + [0, 1, 2, pd.NA], True, marks=pytest.mark.xfail(reason="GH-31948") + ), + (pd.array([0, 1, 2, pd.NA], dtype="Int64"), False), + (pd.array([0, 1, 2, pd.NA], dtype="Int64"), False), + ], + ids=["list-False", "list-True", "integer-array-False", "integer-array-True"], + ) + def test_setitem_integer_with_missing_raises(self, data, idx, box_in_series): + arr = data.copy() + + # TODO(xfail) this raises KeyError about labels not found (it tries label-based) + # for list of labels with Series + if box_in_series: + arr = pd.Series(data, index=[chr(100 + i) for i in range(len(data))]) + + msg = "Cannot index with an integer indexer containing NA values" + with pytest.raises(ValueError, match=msg): + arr[idx] = arr[0] + + @pytest.mark.parametrize("as_callable", [True, False]) + @pytest.mark.parametrize("setter", ["loc", None]) + def test_setitem_mask_aligned(self, data, as_callable, setter): + ser = pd.Series(data) + mask = np.zeros(len(data), dtype=bool) + mask[:2] = True + + if as_callable: + mask2 = lambda x: mask + else: + mask2 = mask + + if setter: + # loc + target = getattr(ser, setter) + else: + # Series.__setitem__ + target = ser + + target[mask2] = data[5:7] + + ser[mask2] = data[5:7] + assert ser[0] == data[5] + assert ser[1] == data[6] + + @pytest.mark.parametrize("setter", ["loc", None]) + def test_setitem_mask_broadcast(self, data, setter): + ser = pd.Series(data) + mask = np.zeros(len(data), dtype=bool) + mask[:2] = True + + if setter: # loc + target = getattr(ser, setter) + else: # __setitem__ + target = ser + + target[mask] = data[10] + assert ser[0] == data[10] + assert ser[1] == data[10] + + def test_setitem_expand_columns(self, data): + df = pd.DataFrame({"A": data}) + result = df.copy() + result["B"] = 1 + expected = pd.DataFrame({"A": data, "B": [1] * len(data)}) + tm.assert_frame_equal(result, expected) + + result = df.copy() + result.loc[:, "B"] = 1 + tm.assert_frame_equal(result, expected) + + # overwrite with new type + result["B"] = data + expected = pd.DataFrame({"A": data, "B": data}) + tm.assert_frame_equal(result, expected) + + def test_setitem_expand_with_extension(self, data): + df = pd.DataFrame({"A": [1] * len(data)}) + result = df.copy() + result["B"] = data + expected = pd.DataFrame({"A": [1] * len(data), "B": data}) + tm.assert_frame_equal(result, expected) + + result = df.copy() + result.loc[:, "B"] = data + tm.assert_frame_equal(result, expected) + + def test_setitem_frame_invalid_length(self, data): + df = pd.DataFrame({"A": [1] * len(data)}) + xpr = ( + rf"Length of values \({len(data[:5])}\) " + rf"does not match length of index \({len(df)}\)" + ) + with pytest.raises(ValueError, match=xpr): + df["B"] = data[:5] + + def test_setitem_tuple_index(self, data): + ser = pd.Series(data[:2], index=[(0, 0), (0, 1)]) + expected = pd.Series(data.take([1, 1]), index=ser.index) + ser[(0, 0)] = data[1] + tm.assert_series_equal(ser, expected) + + def test_setitem_slice(self, data, box_in_series): + arr = data[:5].copy() + expected = data.take([0, 0, 0, 3, 4]) + if box_in_series: + arr = pd.Series(arr) + expected = pd.Series(expected) + + arr[:3] = data[0] + tm.assert_equal(arr, expected) + + def test_setitem_loc_iloc_slice(self, data): + arr = data[:5].copy() + s = pd.Series(arr, index=["a", "b", "c", "d", "e"]) + expected = pd.Series(data.take([0, 0, 0, 3, 4]), index=s.index) + + result = s.copy() + result.iloc[:3] = data[0] + tm.assert_equal(result, expected) + + result = s.copy() + result.loc[:"c"] = data[0] + tm.assert_equal(result, expected) + + def test_setitem_slice_mismatch_length_raises(self, data): + arr = data[:5] + with pytest.raises(ValueError): + arr[:1] = arr[:2] + + def test_setitem_slice_array(self, data): + arr = data[:5].copy() + arr[:5] = data[-5:] + tm.assert_extension_array_equal(arr, data[-5:]) + + def test_setitem_scalar_key_sequence_raise(self, data): + arr = data[:5].copy() + with pytest.raises(ValueError): + arr[0] = arr[[0, 1]] + + def test_setitem_preserves_views(self, data): + # GH#28150 setitem shouldn't swap the underlying data + view1 = data.view() + view2 = data[:] + + data[0] = data[1] + assert view1[0] == data[1] + assert view2[0] == data[1] + + def test_setitem_with_expansion_dataframe_column(self, data, full_indexer): + # https://github.com/pandas-dev/pandas/issues/32395 + df = expected = pd.DataFrame({0: pd.Series(data)}) + result = pd.DataFrame(index=df.index) + + key = full_indexer(df) + result.loc[key, 0] = df[0] + + tm.assert_frame_equal(result, expected) + + def test_setitem_with_expansion_row(self, data, na_value): + df = pd.DataFrame({"data": data[:1]}) + + df.loc[1, "data"] = data[1] + expected = pd.DataFrame({"data": data[:2]}) + tm.assert_frame_equal(df, expected) + + # https://github.com/pandas-dev/pandas/issues/47284 + df.loc[2, "data"] = na_value + expected = pd.DataFrame( + {"data": pd.Series([data[0], data[1], na_value], dtype=data.dtype)} + ) + tm.assert_frame_equal(df, expected) + + def test_setitem_series(self, data, full_indexer): + # https://github.com/pandas-dev/pandas/issues/32395 + ser = pd.Series(data, name="data") + result = pd.Series(index=ser.index, dtype=object, name="data") + + # because result has object dtype, the attempt to do setting inplace + # is successful, and object dtype is retained + key = full_indexer(ser) + result.loc[key] = ser + + expected = pd.Series( + data.astype(object), index=ser.index, name="data", dtype=object + ) + tm.assert_series_equal(result, expected) + + def test_setitem_frame_2d_values(self, data): + # GH#44514 + df = pd.DataFrame({"A": data}) + + # Avoiding using_array_manager fixture + # https://github.com/pandas-dev/pandas/pull/44514#discussion_r754002410 + using_array_manager = isinstance(df._mgr, pd.core.internals.ArrayManager) + using_copy_on_write = pd.options.mode.copy_on_write + + blk_data = df._mgr.arrays[0] + + orig = df.copy() + + df.iloc[:] = df.copy() + tm.assert_frame_equal(df, orig) + + df.iloc[:-1] = df.iloc[:-1].copy() + tm.assert_frame_equal(df, orig) + + df.iloc[:] = df.values + tm.assert_frame_equal(df, orig) + if not using_array_manager and not using_copy_on_write: + # GH#33457 Check that this setting occurred in-place + # FIXME(ArrayManager): this should work there too + assert df._mgr.arrays[0] is blk_data + + df.iloc[:-1] = df.values[:-1] + tm.assert_frame_equal(df, orig) + + def test_delitem_series(self, data): + # GH#40763 + ser = pd.Series(data, name="data") + + taker = np.arange(len(ser)) + taker = np.delete(taker, 1) + + expected = ser[taker] + del ser[1] + tm.assert_series_equal(ser, expected) + + def test_setitem_invalid(self, data, invalid_scalar): + msg = "" # messages vary by subclass, so we do not test it + with pytest.raises((ValueError, TypeError), match=msg): + data[0] = invalid_scalar + + with pytest.raises((ValueError, TypeError), match=msg): + data[:] = invalid_scalar + + def test_setitem_2d_values(self, data): + # GH50085 + original = data.copy() + df = pd.DataFrame({"a": data, "b": data}) + df.loc[[0, 1], :] = df.loc[[1, 0], :].values + assert (df.loc[0, :] == original[1]).all() + assert (df.loc[1, :] == original[0]).all() diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/conftest.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/conftest.py new file mode 100644 index 0000000000000000000000000000000000000000..c5b1295ee4a7d4ad8f4a76b58e4b40837cd46d4c --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/conftest.py @@ -0,0 +1,230 @@ +import operator + +import pytest + +from pandas._config.config import _get_option + +from pandas import ( + Series, + options, +) + + +@pytest.fixture +def dtype(): + """A fixture providing the ExtensionDtype to validate.""" + raise NotImplementedError + + +@pytest.fixture +def data(): + """ + Length-100 array for this type. + + * data[0] and data[1] should both be non missing + * data[0] and data[1] should not be equal + """ + raise NotImplementedError + + +@pytest.fixture +def data_for_twos(dtype): + """ + Length-100 array in which all the elements are two. + + Call pytest.skip in your fixture if the dtype does not support divmod. + """ + if not (dtype._is_numeric or dtype.kind == "m"): + # Object-dtypes may want to allow this, but for the most part + # only numeric and timedelta-like dtypes will need to implement this. + pytest.skip(f"{dtype} is not a numeric dtype") + + raise NotImplementedError + + +@pytest.fixture +def data_missing(): + """Length-2 array with [NA, Valid]""" + raise NotImplementedError + + +@pytest.fixture(params=["data", "data_missing"]) +def all_data(request, data, data_missing): + """Parametrized fixture giving 'data' and 'data_missing'""" + if request.param == "data": + return data + elif request.param == "data_missing": + return data_missing + + +@pytest.fixture +def data_repeated(data): + """ + Generate many datasets. + + Parameters + ---------- + data : fixture implementing `data` + + Returns + ------- + Callable[[int], Generator]: + A callable that takes a `count` argument and + returns a generator yielding `count` datasets. + """ + + def gen(count): + for _ in range(count): + yield data + + return gen + + +@pytest.fixture +def data_for_sorting(): + """ + Length-3 array with a known sort order. + + This should be three items [B, C, A] with + A < B < C + + For boolean dtypes (for which there are only 2 values available), + set B=C=True + """ + raise NotImplementedError + + +@pytest.fixture +def data_missing_for_sorting(): + """ + Length-3 array with a known sort order. + + This should be three items [B, NA, A] with + A < B and NA missing. + """ + raise NotImplementedError + + +@pytest.fixture +def na_cmp(): + """ + Binary operator for comparing NA values. + + Should return a function of two arguments that returns + True if both arguments are (scalar) NA for your type. + + By default, uses ``operator.is_`` + """ + return operator.is_ + + +@pytest.fixture +def na_value(dtype): + """ + The scalar missing value for this type. Default dtype.na_value. + + TODO: can be removed in 3.x (see https://github.com/pandas-dev/pandas/pull/54930) + """ + return dtype.na_value + + +@pytest.fixture +def data_for_grouping(): + """ + Data for factorization, grouping, and unique tests. + + Expected to be like [B, B, NA, NA, A, A, B, C] + + Where A < B < C and NA is missing. + + If a dtype has _is_boolean = True, i.e. only 2 unique non-NA entries, + then set C=B. + """ + raise NotImplementedError + + +@pytest.fixture(params=[True, False]) +def box_in_series(request): + """Whether to box the data in a Series""" + return request.param + + +@pytest.fixture( + params=[ + lambda x: 1, + lambda x: [1] * len(x), + lambda x: Series([1] * len(x)), + lambda x: x, + ], + ids=["scalar", "list", "series", "object"], +) +def groupby_apply_op(request): + """ + Functions to test groupby.apply(). + """ + return request.param + + +@pytest.fixture(params=[True, False]) +def as_frame(request): + """ + Boolean fixture to support Series and Series.to_frame() comparison testing. + """ + return request.param + + +@pytest.fixture(params=[True, False]) +def as_series(request): + """ + Boolean fixture to support arr and Series(arr) comparison testing. + """ + return request.param + + +@pytest.fixture(params=[True, False]) +def use_numpy(request): + """ + Boolean fixture to support comparison testing of ExtensionDtype array + and numpy array. + """ + return request.param + + +@pytest.fixture(params=["ffill", "bfill"]) +def fillna_method(request): + """ + Parametrized fixture giving method parameters 'ffill' and 'bfill' for + Series.fillna(method=) testing. + """ + return request.param + + +@pytest.fixture(params=[True, False]) +def as_array(request): + """ + Boolean fixture to support ExtensionDtype _from_sequence method testing. + """ + return request.param + + +@pytest.fixture +def invalid_scalar(data): + """ + A scalar that *cannot* be held by this ExtensionArray. + + The default should work for most subclasses, but is not guaranteed. + + If the array can hold any item (i.e. object dtype), then use pytest.skip. + """ + return object.__new__(object) + + +@pytest.fixture +def using_copy_on_write() -> bool: + """ + Fixture to check if Copy-on-Write is enabled. + """ + return ( + options.mode.copy_on_write is True + and _get_option("mode.data_manager", silent=True) == "block" + ) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/date/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/date/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..2a8c7e9f57a5da982530b8db854edd37baf13b6b --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/date/__init__.py @@ -0,0 +1,6 @@ +from pandas.tests.extension.date.array import ( + DateArray, + DateDtype, +) + +__all__ = ["DateArray", "DateDtype"] diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/date/array.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/date/array.py new file mode 100644 index 0000000000000000000000000000000000000000..2306f5974ba186587dedb1159d64374601f55c86 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/date/array.py @@ -0,0 +1,188 @@ +from __future__ import annotations + +import datetime as dt +from typing import ( + TYPE_CHECKING, + Any, + cast, +) + +import numpy as np + +from pandas.core.dtypes.dtypes import register_extension_dtype + +from pandas.api.extensions import ( + ExtensionArray, + ExtensionDtype, +) +from pandas.api.types import pandas_dtype + +if TYPE_CHECKING: + from collections.abc import Sequence + + from pandas._typing import ( + Dtype, + PositionalIndexer, + ) + + +@register_extension_dtype +class DateDtype(ExtensionDtype): + @property + def type(self): + return dt.date + + @property + def name(self): + return "DateDtype" + + @classmethod + def construct_from_string(cls, string: str): + if not isinstance(string, str): + raise TypeError( + f"'construct_from_string' expects a string, got {type(string)}" + ) + + if string == cls.__name__: + return cls() + else: + raise TypeError(f"Cannot construct a '{cls.__name__}' from '{string}'") + + @classmethod + def construct_array_type(cls): + return DateArray + + @property + def na_value(self): + return dt.date.min + + def __repr__(self) -> str: + return self.name + + +class DateArray(ExtensionArray): + def __init__( + self, + dates: ( + dt.date + | Sequence[dt.date] + | tuple[np.ndarray, np.ndarray, np.ndarray] + | np.ndarray + ), + ) -> None: + if isinstance(dates, dt.date): + self._year = np.array([dates.year]) + self._month = np.array([dates.month]) + self._day = np.array([dates.year]) + return + + ldates = len(dates) + if isinstance(dates, list): + # pre-allocate the arrays since we know the size before hand + self._year = np.zeros(ldates, dtype=np.uint16) # 65535 (0, 9999) + self._month = np.zeros(ldates, dtype=np.uint8) # 255 (1, 31) + self._day = np.zeros(ldates, dtype=np.uint8) # 255 (1, 12) + # populate them + for i, (y, m, d) in enumerate( + (date.year, date.month, date.day) for date in dates + ): + self._year[i] = y + self._month[i] = m + self._day[i] = d + + elif isinstance(dates, tuple): + # only support triples + if ldates != 3: + raise ValueError("only triples are valid") + # check if all elements have the same type + if any(not isinstance(x, np.ndarray) for x in dates): + raise TypeError("invalid type") + ly, lm, ld = (len(cast(np.ndarray, d)) for d in dates) + if not ly == lm == ld: + raise ValueError( + f"tuple members must have the same length: {(ly, lm, ld)}" + ) + self._year = dates[0].astype(np.uint16) + self._month = dates[1].astype(np.uint8) + self._day = dates[2].astype(np.uint8) + + elif isinstance(dates, np.ndarray) and dates.dtype == "U10": + self._year = np.zeros(ldates, dtype=np.uint16) # 65535 (0, 9999) + self._month = np.zeros(ldates, dtype=np.uint8) # 255 (1, 31) + self._day = np.zeros(ldates, dtype=np.uint8) # 255 (1, 12) + + # error: "object_" object is not iterable + obj = np.char.split(dates, sep="-") + for (i,), (y, m, d) in np.ndenumerate(obj): # type: ignore[misc] + self._year[i] = int(y) + self._month[i] = int(m) + self._day[i] = int(d) + + else: + raise TypeError(f"{type(dates)} is not supported") + + @property + def dtype(self) -> ExtensionDtype: + return DateDtype() + + def astype(self, dtype, copy=True): + dtype = pandas_dtype(dtype) + + if isinstance(dtype, DateDtype): + data = self.copy() if copy else self + else: + data = self.to_numpy(dtype=dtype, copy=copy, na_value=dt.date.min) + + return data + + @property + def nbytes(self) -> int: + return self._year.nbytes + self._month.nbytes + self._day.nbytes + + def __len__(self) -> int: + return len(self._year) # all 3 arrays are enforced to have the same length + + def __getitem__(self, item: PositionalIndexer): + if isinstance(item, int): + return dt.date(self._year[item], self._month[item], self._day[item]) + else: + raise NotImplementedError("only ints are supported as indexes") + + def __setitem__(self, key: int | slice | np.ndarray, value: Any) -> None: + if not isinstance(key, int): + raise NotImplementedError("only ints are supported as indexes") + + if not isinstance(value, dt.date): + raise TypeError("you can only set datetime.date types") + + self._year[key] = value.year + self._month[key] = value.month + self._day[key] = value.day + + def __repr__(self) -> str: + return f"DateArray{list(zip(self._year, self._month, self._day))}" + + def copy(self) -> DateArray: + return DateArray((self._year.copy(), self._month.copy(), self._day.copy())) + + def isna(self) -> np.ndarray: + return np.logical_and( + np.logical_and( + self._year == dt.date.min.year, self._month == dt.date.min.month + ), + self._day == dt.date.min.day, + ) + + @classmethod + def _from_sequence(cls, scalars, *, dtype: Dtype | None = None, copy=False): + if isinstance(scalars, dt.date): + raise TypeError + elif isinstance(scalars, DateArray): + if dtype is not None: + return scalars.astype(dtype, copy=copy) + if copy: + return scalars.copy() + return scalars[:] + elif isinstance(scalars, np.ndarray): + scalars = scalars.astype("U10") # 10 chars for yyyy-mm-dd + return DateArray(scalars) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/decimal/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/decimal/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..34727b43a7b0fb325143dfedee4db25c4b56f5db --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/decimal/__init__.py @@ -0,0 +1,8 @@ +from pandas.tests.extension.decimal.array import ( + DecimalArray, + DecimalDtype, + make_data, + to_decimal, +) + +__all__ = ["DecimalArray", "DecimalDtype", "to_decimal", "make_data"] diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/decimal/array.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/decimal/array.py new file mode 100644 index 0000000000000000000000000000000000000000..521c1ff0b96bc12672b64be0fa191e153692f6da --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/decimal/array.py @@ -0,0 +1,311 @@ +from __future__ import annotations + +import decimal +import numbers +import sys +from typing import TYPE_CHECKING + +import numpy as np + +from pandas.core.dtypes.base import ExtensionDtype +from pandas.core.dtypes.common import ( + is_dtype_equal, + is_float, + is_integer, + pandas_dtype, +) + +import pandas as pd +from pandas.api.extensions import ( + no_default, + register_extension_dtype, +) +from pandas.api.types import ( + is_list_like, + is_scalar, +) +from pandas.core import arraylike +from pandas.core.algorithms import value_counts_internal as value_counts +from pandas.core.arraylike import OpsMixin +from pandas.core.arrays import ( + ExtensionArray, + ExtensionScalarOpsMixin, +) +from pandas.core.indexers import check_array_indexer + +if TYPE_CHECKING: + from pandas._typing import type_t + + +@register_extension_dtype +class DecimalDtype(ExtensionDtype): + type = decimal.Decimal + name = "decimal" + na_value = decimal.Decimal("NaN") + _metadata = ("context",) + + def __init__(self, context=None) -> None: + self.context = context or decimal.getcontext() + + def __repr__(self) -> str: + return f"DecimalDtype(context={self.context})" + + @classmethod + def construct_array_type(cls) -> type_t[DecimalArray]: + """ + Return the array type associated with this dtype. + + Returns + ------- + type + """ + return DecimalArray + + @property + def _is_numeric(self) -> bool: + return True + + +class DecimalArray(OpsMixin, ExtensionScalarOpsMixin, ExtensionArray): + __array_priority__ = 1000 + + def __init__(self, values, dtype=None, copy=False, context=None) -> None: + for i, val in enumerate(values): + if is_float(val) or is_integer(val): + if np.isnan(val): + values[i] = DecimalDtype.na_value + else: + # error: Argument 1 has incompatible type "float | int | + # integer[Any]"; expected "Decimal | float | str | tuple[int, + # Sequence[int], int]" + values[i] = DecimalDtype.type(val) # type: ignore[arg-type] + elif not isinstance(val, decimal.Decimal): + raise TypeError("All values must be of type " + str(decimal.Decimal)) + values = np.asarray(values, dtype=object) + + self._data = values + # Some aliases for common attribute names to ensure pandas supports + # these + self._items = self.data = self._data + # those aliases are currently not working due to assumptions + # in internal code (GH-20735) + # self._values = self.values = self.data + self._dtype = DecimalDtype(context) + + @property + def dtype(self): + return self._dtype + + @classmethod + def _from_sequence(cls, scalars, *, dtype=None, copy=False): + return cls(scalars) + + @classmethod + def _from_sequence_of_strings(cls, strings, dtype=None, copy=False): + return cls._from_sequence( + [decimal.Decimal(x) for x in strings], dtype=dtype, copy=copy + ) + + @classmethod + def _from_factorized(cls, values, original): + return cls(values) + + _HANDLED_TYPES = (decimal.Decimal, numbers.Number, np.ndarray) + + def to_numpy( + self, + dtype=None, + copy: bool = False, + na_value: object = no_default, + decimals=None, + ) -> np.ndarray: + result = np.asarray(self, dtype=dtype) + if decimals is not None: + result = np.asarray([round(x, decimals) for x in result]) + return result + + def __array_ufunc__(self, ufunc: np.ufunc, method: str, *inputs, **kwargs): + # + if not all( + isinstance(t, self._HANDLED_TYPES + (DecimalArray,)) for t in inputs + ): + return NotImplemented + + result = arraylike.maybe_dispatch_ufunc_to_dunder_op( + self, ufunc, method, *inputs, **kwargs + ) + if result is not NotImplemented: + # e.g. test_array_ufunc_series_scalar_other + return result + + if "out" in kwargs: + return arraylike.dispatch_ufunc_with_out( + self, ufunc, method, *inputs, **kwargs + ) + + inputs = tuple(x._data if isinstance(x, DecimalArray) else x for x in inputs) + result = getattr(ufunc, method)(*inputs, **kwargs) + + if method == "reduce": + result = arraylike.dispatch_reduction_ufunc( + self, ufunc, method, *inputs, **kwargs + ) + if result is not NotImplemented: + return result + + def reconstruct(x): + if isinstance(x, (decimal.Decimal, numbers.Number)): + return x + else: + return type(self)._from_sequence(x, dtype=self.dtype) + + if ufunc.nout > 1: + return tuple(reconstruct(x) for x in result) + else: + return reconstruct(result) + + def __getitem__(self, item): + if isinstance(item, numbers.Integral): + return self._data[item] + else: + # array, slice. + item = pd.api.indexers.check_array_indexer(self, item) + return type(self)(self._data[item]) + + def take(self, indexer, allow_fill=False, fill_value=None): + from pandas.api.extensions import take + + data = self._data + if allow_fill and fill_value is None: + fill_value = self.dtype.na_value + + result = take(data, indexer, fill_value=fill_value, allow_fill=allow_fill) + return self._from_sequence(result, dtype=self.dtype) + + def copy(self): + return type(self)(self._data.copy(), dtype=self.dtype) + + def astype(self, dtype, copy=True): + if is_dtype_equal(dtype, self._dtype): + if not copy: + return self + dtype = pandas_dtype(dtype) + if isinstance(dtype, type(self.dtype)): + return type(self)(self._data, copy=copy, context=dtype.context) + + return super().astype(dtype, copy=copy) + + def __setitem__(self, key, value) -> None: + if is_list_like(value): + if is_scalar(key): + raise ValueError("setting an array element with a sequence.") + value = [decimal.Decimal(v) for v in value] + else: + value = decimal.Decimal(value) + + key = check_array_indexer(self, key) + self._data[key] = value + + def __len__(self) -> int: + return len(self._data) + + def __contains__(self, item) -> bool | np.bool_: + if not isinstance(item, decimal.Decimal): + return False + elif item.is_nan(): + return self.isna().any() + else: + return super().__contains__(item) + + @property + def nbytes(self) -> int: + n = len(self) + if n: + return n * sys.getsizeof(self[0]) + return 0 + + def isna(self): + return np.array([x.is_nan() for x in self._data], dtype=bool) + + @property + def _na_value(self): + return decimal.Decimal("NaN") + + def _formatter(self, boxed=False): + if boxed: + return "Decimal: {}".format + return repr + + @classmethod + def _concat_same_type(cls, to_concat): + return cls(np.concatenate([x._data for x in to_concat])) + + def _reduce( + self, name: str, *, skipna: bool = True, keepdims: bool = False, **kwargs + ): + if skipna and self.isna().any(): + # If we don't have any NAs, we can ignore skipna + other = self[~self.isna()] + result = other._reduce(name, **kwargs) + elif name == "sum" and len(self) == 0: + # GH#29630 avoid returning int 0 or np.bool_(False) on old numpy + result = decimal.Decimal(0) + else: + try: + op = getattr(self.data, name) + except AttributeError as err: + raise NotImplementedError( + f"decimal does not support the {name} operation" + ) from err + result = op(axis=0) + + if keepdims: + return type(self)([result]) + else: + return result + + def _cmp_method(self, other, op): + # For use with OpsMixin + def convert_values(param): + if isinstance(param, ExtensionArray) or is_list_like(param): + ovalues = param + else: + # Assume it's an object + ovalues = [param] * len(self) + return ovalues + + lvalues = self + rvalues = convert_values(other) + + # If the operator is not defined for the underlying objects, + # a TypeError should be raised + res = [op(a, b) for (a, b) in zip(lvalues, rvalues)] + + return np.asarray(res, dtype=bool) + + def value_counts(self, dropna: bool = True): + return value_counts(self.to_numpy(), dropna=dropna) + + # We override fillna here to simulate a 3rd party EA that has done so. This + # lets us test the deprecation telling authors to implement _pad_or_backfill + # Simulate a 3rd-party EA that has not yet updated to include a "copy" + # keyword in its fillna method. + # error: Signature of "fillna" incompatible with supertype "ExtensionArray" + def fillna( # type: ignore[override] + self, + value=None, + method=None, + limit: int | None = None, + ): + return super().fillna(value=value, method=method, limit=limit, copy=True) + + +def to_decimal(values, context=None): + return DecimalArray([decimal.Decimal(x) for x in values], context=context) + + +def make_data(): + return [decimal.Decimal(val) for val in np.random.default_rng(2).random(100)] + + +DecimalArray._add_arithmetic_ops() diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/decimal/test_decimal.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/decimal/test_decimal.py new file mode 100644 index 0000000000000000000000000000000000000000..8590cd7fdc23539b148509ea04b88538c9bc5b25 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/decimal/test_decimal.py @@ -0,0 +1,587 @@ +from __future__ import annotations + +import decimal +import operator + +import numpy as np +import pytest + +from pandas.compat.numpy import np_version_gt2 + +import pandas as pd +import pandas._testing as tm +from pandas.tests.extension import base +from pandas.tests.extension.decimal.array import ( + DecimalArray, + DecimalDtype, + make_data, + to_decimal, +) + + +@pytest.fixture +def dtype(): + return DecimalDtype() + + +@pytest.fixture +def data(): + return DecimalArray(make_data()) + + +@pytest.fixture +def data_for_twos(): + return DecimalArray([decimal.Decimal(2) for _ in range(100)]) + + +@pytest.fixture +def data_missing(): + return DecimalArray([decimal.Decimal("NaN"), decimal.Decimal(1)]) + + +@pytest.fixture +def data_for_sorting(): + return DecimalArray( + [decimal.Decimal("1"), decimal.Decimal("2"), decimal.Decimal("0")] + ) + + +@pytest.fixture +def data_missing_for_sorting(): + return DecimalArray( + [decimal.Decimal("1"), decimal.Decimal("NaN"), decimal.Decimal("0")] + ) + + +@pytest.fixture +def na_cmp(): + return lambda x, y: x.is_nan() and y.is_nan() + + +@pytest.fixture +def data_for_grouping(): + b = decimal.Decimal("1.0") + a = decimal.Decimal("0.0") + c = decimal.Decimal("2.0") + na = decimal.Decimal("NaN") + return DecimalArray([b, b, na, na, a, a, b, c]) + + +class TestDecimalArray(base.ExtensionTests): + def _get_expected_exception( + self, op_name: str, obj, other + ) -> type[Exception] | tuple[type[Exception], ...] | None: + return None + + def _supports_reduction(self, ser: pd.Series, op_name: str) -> bool: + return True + + def check_reduce(self, ser: pd.Series, op_name: str, skipna: bool): + if op_name == "count": + return super().check_reduce(ser, op_name, skipna) + else: + result = getattr(ser, op_name)(skipna=skipna) + expected = getattr(np.asarray(ser), op_name)() + tm.assert_almost_equal(result, expected) + + def test_reduce_series_numeric(self, data, all_numeric_reductions, skipna, request): + if all_numeric_reductions in ["kurt", "skew", "sem", "median"]: + mark = pytest.mark.xfail(raises=NotImplementedError) + request.applymarker(mark) + super().test_reduce_series_numeric(data, all_numeric_reductions, skipna) + + def test_reduce_frame(self, data, all_numeric_reductions, skipna, request): + op_name = all_numeric_reductions + if op_name in ["skew", "median"]: + mark = pytest.mark.xfail(raises=NotImplementedError) + request.applymarker(mark) + + return super().test_reduce_frame(data, all_numeric_reductions, skipna) + + def test_compare_scalar(self, data, comparison_op): + ser = pd.Series(data) + self._compare_other(ser, data, comparison_op, 0.5) + + def test_compare_array(self, data, comparison_op): + ser = pd.Series(data) + + alter = np.random.default_rng(2).choice([-1, 0, 1], len(data)) + # Randomly double, halve or keep same value + other = pd.Series(data) * [decimal.Decimal(pow(2.0, i)) for i in alter] + self._compare_other(ser, data, comparison_op, other) + + def test_arith_series_with_array(self, data, all_arithmetic_operators): + op_name = all_arithmetic_operators + ser = pd.Series(data) + + context = decimal.getcontext() + divbyzerotrap = context.traps[decimal.DivisionByZero] + invalidoptrap = context.traps[decimal.InvalidOperation] + context.traps[decimal.DivisionByZero] = 0 + context.traps[decimal.InvalidOperation] = 0 + + # Decimal supports ops with int, but not float + other = pd.Series([int(d * 100) for d in data]) + self.check_opname(ser, op_name, other) + + if "mod" not in op_name: + self.check_opname(ser, op_name, ser * 2) + + self.check_opname(ser, op_name, 0) + self.check_opname(ser, op_name, 5) + context.traps[decimal.DivisionByZero] = divbyzerotrap + context.traps[decimal.InvalidOperation] = invalidoptrap + + def test_fillna_frame(self, data_missing): + msg = "ExtensionArray.fillna added a 'copy' keyword" + with tm.assert_produces_warning( + DeprecationWarning, match=msg, check_stacklevel=False + ): + super().test_fillna_frame(data_missing) + + def test_fillna_limit_pad(self, data_missing): + msg = "ExtensionArray.fillna 'method' keyword is deprecated" + with tm.assert_produces_warning( + DeprecationWarning, + match=msg, + check_stacklevel=False, + raise_on_extra_warnings=False, + ): + super().test_fillna_limit_pad(data_missing) + + msg = "The 'method' keyword in DecimalArray.fillna is deprecated" + with tm.assert_produces_warning( + FutureWarning, + match=msg, + check_stacklevel=False, + raise_on_extra_warnings=False, + ): + super().test_fillna_limit_pad(data_missing) + + @pytest.mark.parametrize( + "limit_area, input_ilocs, expected_ilocs", + [ + ("outside", [1, 0, 0, 0, 1], [1, 0, 0, 0, 1]), + ("outside", [1, 0, 1, 0, 1], [1, 0, 1, 0, 1]), + ("outside", [0, 1, 1, 1, 0], [0, 1, 1, 1, 1]), + ("outside", [0, 1, 0, 1, 0], [0, 1, 0, 1, 1]), + ("inside", [1, 0, 0, 0, 1], [1, 1, 1, 1, 1]), + ("inside", [1, 0, 1, 0, 1], [1, 1, 1, 1, 1]), + ("inside", [0, 1, 1, 1, 0], [0, 1, 1, 1, 0]), + ("inside", [0, 1, 0, 1, 0], [0, 1, 1, 1, 0]), + ], + ) + def test_ffill_limit_area( + self, data_missing, limit_area, input_ilocs, expected_ilocs + ): + # GH#56616 + msg = "ExtensionArray.fillna 'method' keyword is deprecated" + with tm.assert_produces_warning( + DeprecationWarning, + match=msg, + check_stacklevel=False, + raise_on_extra_warnings=False, + ): + msg = "DecimalArray does not implement limit_area" + with pytest.raises(NotImplementedError, match=msg): + super().test_ffill_limit_area( + data_missing, limit_area, input_ilocs, expected_ilocs + ) + + def test_fillna_limit_backfill(self, data_missing): + msg = "Series.fillna with 'method' is deprecated" + with tm.assert_produces_warning( + FutureWarning, + match=msg, + check_stacklevel=False, + raise_on_extra_warnings=False, + ): + super().test_fillna_limit_backfill(data_missing) + + msg = "ExtensionArray.fillna 'method' keyword is deprecated" + with tm.assert_produces_warning( + DeprecationWarning, + match=msg, + check_stacklevel=False, + raise_on_extra_warnings=False, + ): + super().test_fillna_limit_backfill(data_missing) + + msg = "The 'method' keyword in DecimalArray.fillna is deprecated" + with tm.assert_produces_warning( + FutureWarning, + match=msg, + check_stacklevel=False, + raise_on_extra_warnings=False, + ): + super().test_fillna_limit_backfill(data_missing) + + def test_fillna_no_op_returns_copy(self, data): + msg = "|".join( + [ + "ExtensionArray.fillna 'method' keyword is deprecated", + "The 'method' keyword in DecimalArray.fillna is deprecated", + ] + ) + with tm.assert_produces_warning( + (FutureWarning, DeprecationWarning), match=msg, check_stacklevel=False + ): + super().test_fillna_no_op_returns_copy(data) + + def test_fillna_series(self, data_missing): + msg = "ExtensionArray.fillna added a 'copy' keyword" + with tm.assert_produces_warning( + DeprecationWarning, match=msg, check_stacklevel=False + ): + super().test_fillna_series(data_missing) + + def test_fillna_series_method(self, data_missing, fillna_method): + msg = "|".join( + [ + "ExtensionArray.fillna 'method' keyword is deprecated", + "The 'method' keyword in DecimalArray.fillna is deprecated", + ] + ) + with tm.assert_produces_warning( + (FutureWarning, DeprecationWarning), match=msg, check_stacklevel=False + ): + super().test_fillna_series_method(data_missing, fillna_method) + + def test_fillna_copy_frame(self, data_missing, using_copy_on_write): + warn = DeprecationWarning if not using_copy_on_write else None + msg = "ExtensionArray.fillna added a 'copy' keyword" + with tm.assert_produces_warning(warn, match=msg, check_stacklevel=False): + super().test_fillna_copy_frame(data_missing) + + def test_fillna_copy_series(self, data_missing, using_copy_on_write): + warn = DeprecationWarning if not using_copy_on_write else None + msg = "ExtensionArray.fillna added a 'copy' keyword" + with tm.assert_produces_warning(warn, match=msg, check_stacklevel=False): + super().test_fillna_copy_series(data_missing) + + @pytest.mark.parametrize("dropna", [True, False]) + def test_value_counts(self, all_data, dropna, request): + all_data = all_data[:10] + if dropna: + other = np.array(all_data[~all_data.isna()]) + else: + other = all_data + + vcs = pd.Series(all_data).value_counts(dropna=dropna) + vcs_ex = pd.Series(other).value_counts(dropna=dropna) + + with decimal.localcontext() as ctx: + # avoid raising when comparing Decimal("NAN") < Decimal(2) + ctx.traps[decimal.InvalidOperation] = False + + result = vcs.sort_index() + expected = vcs_ex.sort_index() + + tm.assert_series_equal(result, expected) + + def test_series_repr(self, data): + # Overriding this base test to explicitly test that + # the custom _formatter is used + ser = pd.Series(data) + assert data.dtype.name in repr(ser) + assert "Decimal: " in repr(ser) + + @pytest.mark.xfail(reason="Inconsistent array-vs-scalar behavior") + @pytest.mark.parametrize("ufunc", [np.positive, np.negative, np.abs]) + def test_unary_ufunc_dunder_equivalence(self, data, ufunc): + super().test_unary_ufunc_dunder_equivalence(data, ufunc) + + def test_array_interface_copy(self, data): + result_copy1 = np.array(data, copy=True) + result_copy2 = np.array(data, copy=True) + assert not np.may_share_memory(result_copy1, result_copy2) + if not np_version_gt2: + # copy=False semantics are only supported in NumPy>=2. + return + + try: + result_nocopy1 = np.array(data, copy=False) + except ValueError: + # An error is always acceptable for `copy=False` + return + + result_nocopy2 = np.array(data, copy=False) + # If copy=False was given and did not raise, these must share the same data + assert np.may_share_memory(result_nocopy1, result_nocopy2) + + +def test_take_na_value_other_decimal(): + arr = DecimalArray([decimal.Decimal("1.0"), decimal.Decimal("2.0")]) + result = arr.take([0, -1], allow_fill=True, fill_value=decimal.Decimal("-1.0")) + expected = DecimalArray([decimal.Decimal("1.0"), decimal.Decimal("-1.0")]) + tm.assert_extension_array_equal(result, expected) + + +def test_series_constructor_coerce_data_to_extension_dtype(): + dtype = DecimalDtype() + ser = pd.Series([0, 1, 2], dtype=dtype) + + arr = DecimalArray( + [decimal.Decimal(0), decimal.Decimal(1), decimal.Decimal(2)], + dtype=dtype, + ) + exp = pd.Series(arr) + tm.assert_series_equal(ser, exp) + + +def test_series_constructor_with_dtype(): + arr = DecimalArray([decimal.Decimal("10.0")]) + result = pd.Series(arr, dtype=DecimalDtype()) + expected = pd.Series(arr) + tm.assert_series_equal(result, expected) + + result = pd.Series(arr, dtype="int64") + expected = pd.Series([10]) + tm.assert_series_equal(result, expected) + + +def test_dataframe_constructor_with_dtype(): + arr = DecimalArray([decimal.Decimal("10.0")]) + + result = pd.DataFrame({"A": arr}, dtype=DecimalDtype()) + expected = pd.DataFrame({"A": arr}) + tm.assert_frame_equal(result, expected) + + arr = DecimalArray([decimal.Decimal("10.0")]) + result = pd.DataFrame({"A": arr}, dtype="int64") + expected = pd.DataFrame({"A": [10]}) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("frame", [True, False]) +def test_astype_dispatches(frame): + # This is a dtype-specific test that ensures Series[decimal].astype + # gets all the way through to ExtensionArray.astype + # Designing a reliable smoke test that works for arbitrary data types + # is difficult. + data = pd.Series(DecimalArray([decimal.Decimal(2)]), name="a") + ctx = decimal.Context() + ctx.prec = 5 + + if frame: + data = data.to_frame() + + result = data.astype(DecimalDtype(ctx)) + + if frame: + result = result["a"] + + assert result.dtype.context.prec == ctx.prec + + +class DecimalArrayWithoutFromSequence(DecimalArray): + """Helper class for testing error handling in _from_sequence.""" + + @classmethod + def _from_sequence(cls, scalars, *, dtype=None, copy=False): + raise KeyError("For the test") + + +class DecimalArrayWithoutCoercion(DecimalArrayWithoutFromSequence): + @classmethod + def _create_arithmetic_method(cls, op): + return cls._create_method(op, coerce_to_dtype=False) + + +DecimalArrayWithoutCoercion._add_arithmetic_ops() + + +def test_combine_from_sequence_raises(monkeypatch): + # https://github.com/pandas-dev/pandas/issues/22850 + cls = DecimalArrayWithoutFromSequence + + @classmethod + def construct_array_type(cls): + return DecimalArrayWithoutFromSequence + + monkeypatch.setattr(DecimalDtype, "construct_array_type", construct_array_type) + + arr = cls([decimal.Decimal("1.0"), decimal.Decimal("2.0")]) + ser = pd.Series(arr) + result = ser.combine(ser, operator.add) + + # note: object dtype + expected = pd.Series( + [decimal.Decimal("2.0"), decimal.Decimal("4.0")], dtype="object" + ) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "class_", [DecimalArrayWithoutFromSequence, DecimalArrayWithoutCoercion] +) +def test_scalar_ops_from_sequence_raises(class_): + # op(EA, EA) should return an EA, or an ndarray if it's not possible + # to return an EA with the return values. + arr = class_([decimal.Decimal("1.0"), decimal.Decimal("2.0")]) + result = arr + arr + expected = np.array( + [decimal.Decimal("2.0"), decimal.Decimal("4.0")], dtype="object" + ) + tm.assert_numpy_array_equal(result, expected) + + +@pytest.mark.parametrize( + "reverse, expected_div, expected_mod", + [(False, [0, 1, 1, 2], [1, 0, 1, 0]), (True, [2, 1, 0, 0], [0, 0, 2, 2])], +) +def test_divmod_array(reverse, expected_div, expected_mod): + # https://github.com/pandas-dev/pandas/issues/22930 + arr = to_decimal([1, 2, 3, 4]) + if reverse: + div, mod = divmod(2, arr) + else: + div, mod = divmod(arr, 2) + expected_div = to_decimal(expected_div) + expected_mod = to_decimal(expected_mod) + + tm.assert_extension_array_equal(div, expected_div) + tm.assert_extension_array_equal(mod, expected_mod) + + +def test_ufunc_fallback(data): + a = data[:5] + s = pd.Series(a, index=range(3, 8)) + result = np.abs(s) + expected = pd.Series(np.abs(a), index=range(3, 8)) + tm.assert_series_equal(result, expected) + + +def test_array_ufunc(): + a = to_decimal([1, 2, 3]) + result = np.exp(a) + expected = to_decimal(np.exp(a._data)) + tm.assert_extension_array_equal(result, expected) + + +def test_array_ufunc_series(): + a = to_decimal([1, 2, 3]) + s = pd.Series(a) + result = np.exp(s) + expected = pd.Series(to_decimal(np.exp(a._data))) + tm.assert_series_equal(result, expected) + + +def test_array_ufunc_series_scalar_other(): + # check _HANDLED_TYPES + a = to_decimal([1, 2, 3]) + s = pd.Series(a) + result = np.add(s, decimal.Decimal(1)) + expected = pd.Series(np.add(a, decimal.Decimal(1))) + tm.assert_series_equal(result, expected) + + +def test_array_ufunc_series_defer(): + a = to_decimal([1, 2, 3]) + s = pd.Series(a) + + expected = pd.Series(to_decimal([2, 4, 6])) + r1 = np.add(s, a) + r2 = np.add(a, s) + + tm.assert_series_equal(r1, expected) + tm.assert_series_equal(r2, expected) + + +def test_groupby_agg(): + # Ensure that the result of agg is inferred to be decimal dtype + # https://github.com/pandas-dev/pandas/issues/29141 + + data = make_data()[:5] + df = pd.DataFrame( + {"id1": [0, 0, 0, 1, 1], "id2": [0, 1, 0, 1, 1], "decimals": DecimalArray(data)} + ) + + # single key, selected column + expected = pd.Series(to_decimal([data[0], data[3]])) + result = df.groupby("id1")["decimals"].agg(lambda x: x.iloc[0]) + tm.assert_series_equal(result, expected, check_names=False) + result = df["decimals"].groupby(df["id1"]).agg(lambda x: x.iloc[0]) + tm.assert_series_equal(result, expected, check_names=False) + + # multiple keys, selected column + expected = pd.Series( + to_decimal([data[0], data[1], data[3]]), + index=pd.MultiIndex.from_tuples([(0, 0), (0, 1), (1, 1)]), + ) + result = df.groupby(["id1", "id2"])["decimals"].agg(lambda x: x.iloc[0]) + tm.assert_series_equal(result, expected, check_names=False) + result = df["decimals"].groupby([df["id1"], df["id2"]]).agg(lambda x: x.iloc[0]) + tm.assert_series_equal(result, expected, check_names=False) + + # multiple columns + expected = pd.DataFrame({"id2": [0, 1], "decimals": to_decimal([data[0], data[3]])}) + result = df.groupby("id1").agg(lambda x: x.iloc[0]) + tm.assert_frame_equal(result, expected, check_names=False) + + +def test_groupby_agg_ea_method(monkeypatch): + # Ensure that the result of agg is inferred to be decimal dtype + # https://github.com/pandas-dev/pandas/issues/29141 + + def DecimalArray__my_sum(self): + return np.sum(np.array(self)) + + monkeypatch.setattr(DecimalArray, "my_sum", DecimalArray__my_sum, raising=False) + + data = make_data()[:5] + df = pd.DataFrame({"id": [0, 0, 0, 1, 1], "decimals": DecimalArray(data)}) + expected = pd.Series(to_decimal([data[0] + data[1] + data[2], data[3] + data[4]])) + + result = df.groupby("id")["decimals"].agg(lambda x: x.values.my_sum()) + tm.assert_series_equal(result, expected, check_names=False) + s = pd.Series(DecimalArray(data)) + grouper = np.array([0, 0, 0, 1, 1], dtype=np.int64) + result = s.groupby(grouper).agg(lambda x: x.values.my_sum()) + tm.assert_series_equal(result, expected, check_names=False) + + +def test_indexing_no_materialize(monkeypatch): + # See https://github.com/pandas-dev/pandas/issues/29708 + # Ensure that indexing operations do not materialize (convert to a numpy + # array) the ExtensionArray unnecessary + + def DecimalArray__array__(self, dtype=None): + raise Exception("tried to convert a DecimalArray to a numpy array") + + monkeypatch.setattr(DecimalArray, "__array__", DecimalArray__array__, raising=False) + + data = make_data() + s = pd.Series(DecimalArray(data)) + df = pd.DataFrame({"a": s, "b": range(len(s))}) + + # ensure the following operations do not raise an error + s[s > 0.5] + df[s > 0.5] + s.at[0] + df.at[0, "a"] + + +def test_to_numpy_keyword(): + # test the extra keyword + values = [decimal.Decimal("1.1111"), decimal.Decimal("2.2222")] + expected = np.array( + [decimal.Decimal("1.11"), decimal.Decimal("2.22")], dtype="object" + ) + a = pd.array(values, dtype="decimal") + result = a.to_numpy(decimals=2) + tm.assert_numpy_array_equal(result, expected) + + result = pd.Series(a).to_numpy(decimals=2) + tm.assert_numpy_array_equal(result, expected) + + +def test_array_copy_on_write(using_copy_on_write): + df = pd.DataFrame({"a": [decimal.Decimal(2), decimal.Decimal(3)]}, dtype="object") + df2 = df.astype(DecimalDtype()) + df.iloc[0, 0] = 0 + if using_copy_on_write: + expected = pd.DataFrame( + {"a": [decimal.Decimal(2), decimal.Decimal(3)]}, dtype=DecimalDtype() + ) + tm.assert_equal(df2.values, expected.values) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/json/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/json/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..7ebfd54a5b0d6bf1ff2c4602ed72f5214e32608f --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/json/__init__.py @@ -0,0 +1,7 @@ +from pandas.tests.extension.json.array import ( + JSONArray, + JSONDtype, + make_data, +) + +__all__ = ["JSONArray", "JSONDtype", "make_data"] diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/json/array.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/json/array.py new file mode 100644 index 0000000000000000000000000000000000000000..5ff99589a19611922b6fb82aa106a7bf829fc2ce --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/json/array.py @@ -0,0 +1,273 @@ +""" +Test extension array for storing nested data in a pandas container. + +The JSONArray stores lists of dictionaries. The storage mechanism is a list, +not an ndarray. + +Note +---- +We currently store lists of UserDicts. Pandas has a few places +internally that specifically check for dicts, and does non-scalar things +in that case. We *want* the dictionaries to be treated as scalars, so we +hack around pandas by using UserDicts. +""" +from __future__ import annotations + +from collections import ( + UserDict, + abc, +) +import itertools +import numbers +import string +import sys +from typing import ( + TYPE_CHECKING, + Any, +) +import warnings + +import numpy as np + +from pandas.util._exceptions import find_stack_level + +from pandas.core.dtypes.cast import construct_1d_object_array_from_listlike +from pandas.core.dtypes.common import ( + is_bool_dtype, + is_list_like, + pandas_dtype, +) + +import pandas as pd +from pandas.api.extensions import ( + ExtensionArray, + ExtensionDtype, +) +from pandas.core.indexers import unpack_tuple_and_ellipses + +if TYPE_CHECKING: + from collections.abc import Mapping + + from pandas._typing import type_t + + +class JSONDtype(ExtensionDtype): + type = abc.Mapping + name = "json" + na_value: Mapping[str, Any] = UserDict() + + @classmethod + def construct_array_type(cls) -> type_t[JSONArray]: + """ + Return the array type associated with this dtype. + + Returns + ------- + type + """ + return JSONArray + + +class JSONArray(ExtensionArray): + dtype = JSONDtype() + __array_priority__ = 1000 + + def __init__(self, values, dtype=None, copy=False) -> None: + for val in values: + if not isinstance(val, self.dtype.type): + raise TypeError("All values must be of type " + str(self.dtype.type)) + self.data = values + + # Some aliases for common attribute names to ensure pandas supports + # these + self._items = self._data = self.data + # those aliases are currently not working due to assumptions + # in internal code (GH-20735) + # self._values = self.values = self.data + + @classmethod + def _from_sequence(cls, scalars, *, dtype=None, copy=False): + return cls(scalars) + + @classmethod + def _from_factorized(cls, values, original): + return cls([UserDict(x) for x in values if x != ()]) + + def __getitem__(self, item): + if isinstance(item, tuple): + item = unpack_tuple_and_ellipses(item) + + if isinstance(item, numbers.Integral): + return self.data[item] + elif isinstance(item, slice) and item == slice(None): + # Make sure we get a view + return type(self)(self.data) + elif isinstance(item, slice): + # slice + return type(self)(self.data[item]) + elif not is_list_like(item): + # e.g. "foo" or 2.5 + # exception message copied from numpy + raise IndexError( + r"only integers, slices (`:`), ellipsis (`...`), numpy.newaxis " + r"(`None`) and integer or boolean arrays are valid indices" + ) + else: + item = pd.api.indexers.check_array_indexer(self, item) + if is_bool_dtype(item.dtype): + return type(self)._from_sequence( + [x for x, m in zip(self, item) if m], dtype=self.dtype + ) + # integer + return type(self)([self.data[i] for i in item]) + + def __setitem__(self, key, value) -> None: + if isinstance(key, numbers.Integral): + self.data[key] = value + else: + if not isinstance(value, (type(self), abc.Sequence)): + # broadcast value + value = itertools.cycle([value]) + + if isinstance(key, np.ndarray) and key.dtype == "bool": + # masking + for i, (k, v) in enumerate(zip(key, value)): + if k: + assert isinstance(v, self.dtype.type) + self.data[i] = v + else: + for k, v in zip(key, value): + assert isinstance(v, self.dtype.type) + self.data[k] = v + + def __len__(self) -> int: + return len(self.data) + + def __eq__(self, other): + return NotImplemented + + def __ne__(self, other): + return NotImplemented + + def __array__(self, dtype=None, copy=None): + if copy is False: + warnings.warn( + "Starting with NumPy 2.0, the behavior of the 'copy' keyword has " + "changed and passing 'copy=False' raises an error when returning " + "a zero-copy NumPy array is not possible. pandas will follow " + "this behavior starting with pandas 3.0.\nThis conversion to " + "NumPy requires a copy, but 'copy=False' was passed. Consider " + "using 'np.asarray(..)' instead.", + FutureWarning, + stacklevel=find_stack_level(), + ) + + if dtype is None: + dtype = object + if dtype == object: + # on py38 builds it looks like numpy is inferring to a non-1D array + return construct_1d_object_array_from_listlike(list(self)) + if copy is None: + # Note: branch avoids `copy=None` for NumPy 1.x support + return np.asarray(self.data, dtype=dtype) + return np.asarray(self.data, dtype=dtype, copy=copy) + + @property + def nbytes(self) -> int: + return sys.getsizeof(self.data) + + def isna(self): + return np.array([x == self.dtype.na_value for x in self.data], dtype=bool) + + def take(self, indexer, allow_fill=False, fill_value=None): + # re-implement here, since NumPy has trouble setting + # sized objects like UserDicts into scalar slots of + # an ndarary. + indexer = np.asarray(indexer) + msg = ( + "Index is out of bounds or cannot do a " + "non-empty take from an empty array." + ) + + if allow_fill: + if fill_value is None: + fill_value = self.dtype.na_value + # bounds check + if (indexer < -1).any(): + raise ValueError + try: + output = [ + self.data[loc] if loc != -1 else fill_value for loc in indexer + ] + except IndexError as err: + raise IndexError(msg) from err + else: + try: + output = [self.data[loc] for loc in indexer] + except IndexError as err: + raise IndexError(msg) from err + + return type(self)._from_sequence(output, dtype=self.dtype) + + def copy(self): + return type(self)(self.data[:]) + + def astype(self, dtype, copy=True): + # NumPy has issues when all the dicts are the same length. + # np.array([UserDict(...), UserDict(...)]) fails, + # but np.array([{...}, {...}]) works, so cast. + from pandas.core.arrays.string_ import StringDtype + + dtype = pandas_dtype(dtype) + # needed to add this check for the Series constructor + if isinstance(dtype, type(self.dtype)) and dtype == self.dtype: + if copy: + return self.copy() + return self + elif isinstance(dtype, StringDtype): + arr_cls = dtype.construct_array_type() + return arr_cls._from_sequence(self, dtype=dtype, copy=False) + elif not copy: + return np.asarray([dict(x) for x in self], dtype=dtype) + else: + return np.array([dict(x) for x in self], dtype=dtype, copy=copy) + + def unique(self): + # Parent method doesn't work since np.array will try to infer + # a 2-dim object. + return type(self)([dict(x) for x in {tuple(d.items()) for d in self.data}]) + + @classmethod + def _concat_same_type(cls, to_concat): + data = list(itertools.chain.from_iterable(x.data for x in to_concat)) + return cls(data) + + def _values_for_factorize(self): + frozen = self._values_for_argsort() + if len(frozen) == 0: + # factorize_array expects 1-d array, this is a len-0 2-d array. + frozen = frozen.ravel() + return frozen, () + + def _values_for_argsort(self): + # Bypass NumPy's shape inference to get a (N,) array of tuples. + frozen = [tuple(x.items()) for x in self] + return construct_1d_object_array_from_listlike(frozen) + + def _pad_or_backfill(self, *, method, limit=None, copy=True): + # GH#56616 - test EA method without limit_area argument + return super()._pad_or_backfill(method=method, limit=limit, copy=copy) + + +def make_data(): + # TODO: Use a regular dict. See _NDFrameIndexer._setitem_with_indexer + rng = np.random.default_rng(2) + return [ + UserDict( + [ + (rng.choice(list(string.ascii_letters)), rng.integers(0, 100)) + for _ in range(rng.integers(0, 10)) + ] + ) + for _ in range(100) + ] diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/json/test_json.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/json/test_json.py new file mode 100644 index 0000000000000000000000000000000000000000..a18edac9aef93804bd02698dd0b44d5b31f6b887 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/json/test_json.py @@ -0,0 +1,490 @@ +import collections +import operator +import sys + +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm +from pandas.tests.extension import base +from pandas.tests.extension.json.array import ( + JSONArray, + JSONDtype, + make_data, +) + +# We intentionally don't run base.BaseSetitemTests because pandas' +# internals has trouble setting sequences of values into scalar positions. +unhashable = pytest.mark.xfail(reason="Unhashable") + + +@pytest.fixture +def dtype(): + return JSONDtype() + + +@pytest.fixture +def data(): + """Length-100 PeriodArray for semantics test.""" + data = make_data() + + # Why the while loop? NumPy is unable to construct an ndarray from + # equal-length ndarrays. Many of our operations involve coercing the + # EA to an ndarray of objects. To avoid random test failures, we ensure + # that our data is coercible to an ndarray. Several tests deal with only + # the first two elements, so that's what we'll check. + + while len(data[0]) == len(data[1]): + data = make_data() + + return JSONArray(data) + + +@pytest.fixture +def data_missing(): + """Length 2 array with [NA, Valid]""" + return JSONArray([{}, {"a": 10}]) + + +@pytest.fixture +def data_for_sorting(): + return JSONArray([{"b": 1}, {"c": 4}, {"a": 2, "c": 3}]) + + +@pytest.fixture +def data_missing_for_sorting(): + return JSONArray([{"b": 1}, {}, {"a": 4}]) + + +@pytest.fixture +def na_cmp(): + return operator.eq + + +@pytest.fixture +def data_for_grouping(): + return JSONArray( + [ + {"b": 1}, + {"b": 1}, + {}, + {}, + {"a": 0, "c": 2}, + {"a": 0, "c": 2}, + {"b": 1}, + {"c": 2}, + ] + ) + + +class TestJSONArray(base.ExtensionTests): + @pytest.mark.xfail( + reason="comparison method not implemented for JSONArray (GH-37867)" + ) + def test_contains(self, data): + # GH-37867 + super().test_contains(data) + + @pytest.mark.xfail(reason="not implemented constructor from dtype") + def test_from_dtype(self, data): + # construct from our dtype & string dtype + super().test_from_dtype(data) + + @pytest.mark.xfail(reason="RecursionError, GH-33900") + def test_series_constructor_no_data_with_index(self, dtype, na_value): + # RecursionError: maximum recursion depth exceeded in comparison + rec_limit = sys.getrecursionlimit() + try: + # Limit to avoid stack overflow on Windows CI + sys.setrecursionlimit(100) + super().test_series_constructor_no_data_with_index(dtype, na_value) + finally: + sys.setrecursionlimit(rec_limit) + + @pytest.mark.xfail(reason="RecursionError, GH-33900") + def test_series_constructor_scalar_na_with_index(self, dtype, na_value): + # RecursionError: maximum recursion depth exceeded in comparison + rec_limit = sys.getrecursionlimit() + try: + # Limit to avoid stack overflow on Windows CI + sys.setrecursionlimit(100) + super().test_series_constructor_scalar_na_with_index(dtype, na_value) + finally: + sys.setrecursionlimit(rec_limit) + + @pytest.mark.xfail(reason="collection as scalar, GH-33901") + def test_series_constructor_scalar_with_index(self, data, dtype): + # TypeError: All values must be of type + rec_limit = sys.getrecursionlimit() + try: + # Limit to avoid stack overflow on Windows CI + sys.setrecursionlimit(100) + super().test_series_constructor_scalar_with_index(data, dtype) + finally: + sys.setrecursionlimit(rec_limit) + + @pytest.mark.xfail(reason="Different definitions of NA") + def test_stack(self): + """ + The test does .astype(object).stack(future_stack=True). If we happen to have + any missing values in `data`, then we'll end up with different + rows since we consider `{}` NA, but `.astype(object)` doesn't. + """ + super().test_stack() + + @pytest.mark.xfail(reason="dict for NA") + def test_unstack(self, data, index): + # The base test has NaN for the expected NA value. + # this matches otherwise + return super().test_unstack(data, index) + + @pytest.mark.xfail(reason="Setting a dict as a scalar") + def test_fillna_series(self): + """We treat dictionaries as a mapping in fillna, not a scalar.""" + super().test_fillna_series() + + @pytest.mark.xfail(reason="Setting a dict as a scalar") + def test_fillna_frame(self): + """We treat dictionaries as a mapping in fillna, not a scalar.""" + super().test_fillna_frame() + + @pytest.mark.parametrize( + "limit_area, input_ilocs, expected_ilocs", + [ + ("outside", [1, 0, 0, 0, 1], [1, 0, 0, 0, 1]), + ("outside", [1, 0, 1, 0, 1], [1, 0, 1, 0, 1]), + ("outside", [0, 1, 1, 1, 0], [0, 1, 1, 1, 1]), + ("outside", [0, 1, 0, 1, 0], [0, 1, 0, 1, 1]), + ("inside", [1, 0, 0, 0, 1], [1, 1, 1, 1, 1]), + ("inside", [1, 0, 1, 0, 1], [1, 1, 1, 1, 1]), + ("inside", [0, 1, 1, 1, 0], [0, 1, 1, 1, 0]), + ("inside", [0, 1, 0, 1, 0], [0, 1, 1, 1, 0]), + ], + ) + def test_ffill_limit_area( + self, data_missing, limit_area, input_ilocs, expected_ilocs + ): + # GH#56616 + msg = "JSONArray does not implement limit_area" + with pytest.raises(NotImplementedError, match=msg): + super().test_ffill_limit_area( + data_missing, limit_area, input_ilocs, expected_ilocs + ) + + @unhashable + def test_value_counts(self, all_data, dropna): + super().test_value_counts(all_data, dropna) + + @unhashable + def test_value_counts_with_normalize(self, data): + super().test_value_counts_with_normalize(data) + + @unhashable + def test_sort_values_frame(self): + # TODO (EA.factorize): see if _values_for_factorize allows this. + super().test_sort_values_frame() + + @pytest.mark.parametrize("ascending", [True, False]) + def test_sort_values(self, data_for_sorting, ascending, sort_by_key): + super().test_sort_values(data_for_sorting, ascending, sort_by_key) + + @pytest.mark.parametrize("ascending", [True, False]) + def test_sort_values_missing( + self, data_missing_for_sorting, ascending, sort_by_key + ): + super().test_sort_values_missing( + data_missing_for_sorting, ascending, sort_by_key + ) + + @pytest.mark.xfail(reason="combine for JSONArray not supported") + def test_combine_le(self, data_repeated): + super().test_combine_le(data_repeated) + + @pytest.mark.xfail( + reason="combine for JSONArray not supported - " + "may pass depending on random data", + strict=False, + raises=AssertionError, + ) + def test_combine_first(self, data): + super().test_combine_first(data) + + @pytest.mark.xfail(reason="broadcasting error") + def test_where_series(self, data, na_value): + # Fails with + # *** ValueError: operands could not be broadcast together + # with shapes (4,) (4,) (0,) + super().test_where_series(data, na_value) + + @pytest.mark.xfail(reason="Can't compare dicts.") + def test_searchsorted(self, data_for_sorting): + super().test_searchsorted(data_for_sorting) + + @pytest.mark.xfail(reason="Can't compare dicts.") + def test_equals(self, data, na_value, as_series): + super().test_equals(data, na_value, as_series) + + @pytest.mark.skip("fill-value is interpreted as a dict of values") + def test_fillna_copy_frame(self, data_missing): + super().test_fillna_copy_frame(data_missing) + + def test_equals_same_data_different_object( + self, data, using_copy_on_write, request + ): + if using_copy_on_write: + mark = pytest.mark.xfail(reason="Fails with CoW") + request.applymarker(mark) + super().test_equals_same_data_different_object(data) + + @pytest.mark.xfail(reason="failing on np.array(self, dtype=str)") + def test_astype_str(self): + """This currently fails in NumPy on np.array(self, dtype=str) with + + *** ValueError: setting an array element with a sequence + """ + super().test_astype_str() + + @unhashable + def test_groupby_extension_transform(self): + """ + This currently fails in Series.name.setter, since the + name must be hashable, but the value is a dictionary. + I think this is what we want, i.e. `.name` should be the original + values, and not the values for factorization. + """ + super().test_groupby_extension_transform() + + @unhashable + def test_groupby_extension_apply(self): + """ + This fails in Index._do_unique_check with + + > hash(val) + E TypeError: unhashable type: 'UserDict' with + + I suspect that once we support Index[ExtensionArray], + we'll be able to dispatch unique. + """ + super().test_groupby_extension_apply() + + @unhashable + def test_groupby_extension_agg(self): + """ + This fails when we get to tm.assert_series_equal when left.index + contains dictionaries, which are not hashable. + """ + super().test_groupby_extension_agg() + + @unhashable + def test_groupby_extension_no_sort(self): + """ + This fails when we get to tm.assert_series_equal when left.index + contains dictionaries, which are not hashable. + """ + super().test_groupby_extension_no_sort() + + def test_arith_frame_with_scalar(self, data, all_arithmetic_operators, request): + if len(data[0]) != 1: + mark = pytest.mark.xfail(reason="raises in coercing to Series") + request.applymarker(mark) + super().test_arith_frame_with_scalar(data, all_arithmetic_operators) + + def test_compare_array(self, data, comparison_op, request): + if comparison_op.__name__ in ["eq", "ne"]: + mark = pytest.mark.xfail(reason="Comparison methods not implemented") + request.applymarker(mark) + super().test_compare_array(data, comparison_op) + + @pytest.mark.xfail(reason="ValueError: Must have equal len keys and value") + def test_setitem_loc_scalar_mixed(self, data): + super().test_setitem_loc_scalar_mixed(data) + + @pytest.mark.xfail(reason="ValueError: Must have equal len keys and value") + def test_setitem_loc_scalar_multiple_homogoneous(self, data): + super().test_setitem_loc_scalar_multiple_homogoneous(data) + + @pytest.mark.xfail(reason="ValueError: Must have equal len keys and value") + def test_setitem_iloc_scalar_mixed(self, data): + super().test_setitem_iloc_scalar_mixed(data) + + @pytest.mark.xfail(reason="ValueError: Must have equal len keys and value") + def test_setitem_iloc_scalar_multiple_homogoneous(self, data): + super().test_setitem_iloc_scalar_multiple_homogoneous(data) + + @pytest.mark.parametrize( + "mask", + [ + np.array([True, True, True, False, False]), + pd.array([True, True, True, False, False], dtype="boolean"), + pd.array([True, True, True, pd.NA, pd.NA], dtype="boolean"), + ], + ids=["numpy-array", "boolean-array", "boolean-array-na"], + ) + def test_setitem_mask(self, data, mask, box_in_series, request): + if box_in_series: + mark = pytest.mark.xfail( + reason="cannot set using a list-like indexer with a different length" + ) + request.applymarker(mark) + elif not isinstance(mask, np.ndarray): + mark = pytest.mark.xfail(reason="Issues unwanted DeprecationWarning") + request.applymarker(mark) + super().test_setitem_mask(data, mask, box_in_series) + + def test_setitem_mask_raises(self, data, box_in_series, request): + if not box_in_series: + mark = pytest.mark.xfail(reason="Fails to raise") + request.applymarker(mark) + + super().test_setitem_mask_raises(data, box_in_series) + + @pytest.mark.xfail( + reason="cannot set using a list-like indexer with a different length" + ) + def test_setitem_mask_boolean_array_with_na(self, data, box_in_series): + super().test_setitem_mask_boolean_array_with_na(data, box_in_series) + + @pytest.mark.parametrize( + "idx", + [[0, 1, 2], pd.array([0, 1, 2], dtype="Int64"), np.array([0, 1, 2])], + ids=["list", "integer-array", "numpy-array"], + ) + def test_setitem_integer_array(self, data, idx, box_in_series, request): + if box_in_series: + mark = pytest.mark.xfail( + reason="cannot set using a list-like indexer with a different length" + ) + request.applymarker(mark) + super().test_setitem_integer_array(data, idx, box_in_series) + + @pytest.mark.xfail(reason="list indices must be integers or slices, not NAType") + @pytest.mark.parametrize( + "idx, box_in_series", + [ + ([0, 1, 2, pd.NA], False), + pytest.param( + [0, 1, 2, pd.NA], True, marks=pytest.mark.xfail(reason="GH-31948") + ), + (pd.array([0, 1, 2, pd.NA], dtype="Int64"), False), + (pd.array([0, 1, 2, pd.NA], dtype="Int64"), False), + ], + ids=["list-False", "list-True", "integer-array-False", "integer-array-True"], + ) + def test_setitem_integer_with_missing_raises(self, data, idx, box_in_series): + super().test_setitem_integer_with_missing_raises(data, idx, box_in_series) + + @pytest.mark.xfail(reason="Fails to raise") + def test_setitem_scalar_key_sequence_raise(self, data): + super().test_setitem_scalar_key_sequence_raise(data) + + def test_setitem_with_expansion_dataframe_column(self, data, full_indexer, request): + if "full_slice" in request.node.name: + mark = pytest.mark.xfail(reason="slice is not iterable") + request.applymarker(mark) + super().test_setitem_with_expansion_dataframe_column(data, full_indexer) + + @pytest.mark.xfail(reason="slice is not iterable") + def test_setitem_frame_2d_values(self, data): + super().test_setitem_frame_2d_values(data) + + @pytest.mark.xfail( + reason="cannot set using a list-like indexer with a different length" + ) + @pytest.mark.parametrize("setter", ["loc", None]) + def test_setitem_mask_broadcast(self, data, setter): + super().test_setitem_mask_broadcast(data, setter) + + @pytest.mark.xfail( + reason="cannot set using a slice indexer with a different length" + ) + def test_setitem_slice(self, data, box_in_series): + super().test_setitem_slice(data, box_in_series) + + @pytest.mark.xfail(reason="slice object is not iterable") + def test_setitem_loc_iloc_slice(self, data): + super().test_setitem_loc_iloc_slice(data) + + @pytest.mark.xfail(reason="slice object is not iterable") + def test_setitem_slice_mismatch_length_raises(self, data): + super().test_setitem_slice_mismatch_length_raises(data) + + @pytest.mark.xfail(reason="slice object is not iterable") + def test_setitem_slice_array(self, data): + super().test_setitem_slice_array(data) + + @pytest.mark.xfail(reason="Fail to raise") + def test_setitem_invalid(self, data, invalid_scalar): + super().test_setitem_invalid(data, invalid_scalar) + + @pytest.mark.xfail(reason="only integer scalar arrays can be converted") + def test_setitem_2d_values(self, data): + super().test_setitem_2d_values(data) + + @pytest.mark.xfail(reason="data type 'json' not understood") + @pytest.mark.parametrize("engine", ["c", "python"]) + def test_EA_types(self, engine, data, request): + super().test_EA_types(engine, data, request) + + +def custom_assert_series_equal(left, right, *args, **kwargs): + # NumPy doesn't handle an array of equal-length UserDicts. + # The default assert_series_equal eventually does a + # Series.values, which raises. We work around it by + # converting the UserDicts to dicts. + if left.dtype.name == "json": + assert left.dtype == right.dtype + left = pd.Series( + JSONArray(left.values.astype(object)), index=left.index, name=left.name + ) + right = pd.Series( + JSONArray(right.values.astype(object)), + index=right.index, + name=right.name, + ) + tm.assert_series_equal(left, right, *args, **kwargs) + + +def custom_assert_frame_equal(left, right, *args, **kwargs): + obj_type = kwargs.get("obj", "DataFrame") + tm.assert_index_equal( + left.columns, + right.columns, + exact=kwargs.get("check_column_type", "equiv"), + check_names=kwargs.get("check_names", True), + check_exact=kwargs.get("check_exact", False), + check_categorical=kwargs.get("check_categorical", True), + obj=f"{obj_type}.columns", + ) + + jsons = (left.dtypes == "json").index + + for col in jsons: + custom_assert_series_equal(left[col], right[col], *args, **kwargs) + + left = left.drop(columns=jsons) + right = right.drop(columns=jsons) + tm.assert_frame_equal(left, right, *args, **kwargs) + + +def test_custom_asserts(): + # This would always trigger the KeyError from trying to put + # an array of equal-length UserDicts inside an ndarray. + data = JSONArray( + [ + collections.UserDict({"a": 1}), + collections.UserDict({"b": 2}), + collections.UserDict({"c": 3}), + ] + ) + a = pd.Series(data) + custom_assert_series_equal(a, a) + custom_assert_frame_equal(a.to_frame(), a.to_frame()) + + b = pd.Series(data.take([0, 0, 1])) + msg = r"Series are different" + with pytest.raises(AssertionError, match=msg): + custom_assert_series_equal(a, b) + + with pytest.raises(AssertionError, match=msg): + custom_assert_frame_equal(a.to_frame(), b.to_frame()) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/list/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/list/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..0f3f2f35377882a0fae603edfc8edb46371429fe --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/list/__init__.py @@ -0,0 +1,7 @@ +from pandas.tests.extension.list.array import ( + ListArray, + ListDtype, + make_data, +) + +__all__ = ["ListArray", "ListDtype", "make_data"] diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/list/array.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/list/array.py new file mode 100644 index 0000000000000000000000000000000000000000..b3bb35c9396f4d1748fff37b7334c68a0b055daf --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/list/array.py @@ -0,0 +1,137 @@ +""" +Test extension array for storing nested data in a pandas container. + +The ListArray stores an ndarray of lists. +""" +from __future__ import annotations + +import numbers +import string +from typing import TYPE_CHECKING + +import numpy as np + +from pandas.core.dtypes.base import ExtensionDtype + +import pandas as pd +from pandas.api.types import ( + is_object_dtype, + is_string_dtype, +) +from pandas.core.arrays import ExtensionArray + +if TYPE_CHECKING: + from pandas._typing import type_t + + +class ListDtype(ExtensionDtype): + type = list + name = "list" + na_value = np.nan + + @classmethod + def construct_array_type(cls) -> type_t[ListArray]: + """ + Return the array type associated with this dtype. + + Returns + ------- + type + """ + return ListArray + + +class ListArray(ExtensionArray): + dtype = ListDtype() + __array_priority__ = 1000 + + def __init__(self, values, dtype=None, copy=False) -> None: + if not isinstance(values, np.ndarray): + raise TypeError("Need to pass a numpy array as values") + for val in values: + if not isinstance(val, self.dtype.type) and not pd.isna(val): + raise TypeError("All values must be of type " + str(self.dtype.type)) + self.data = values + + @classmethod + def _from_sequence(cls, scalars, *, dtype=None, copy=False): + data = np.empty(len(scalars), dtype=object) + data[:] = scalars + return cls(data) + + def __getitem__(self, item): + if isinstance(item, numbers.Integral): + return self.data[item] + else: + # slice, list-like, mask + return type(self)(self.data[item]) + + def __len__(self) -> int: + return len(self.data) + + def isna(self): + return np.array( + [not isinstance(x, list) and np.isnan(x) for x in self.data], dtype=bool + ) + + def take(self, indexer, allow_fill=False, fill_value=None): + # re-implement here, since NumPy has trouble setting + # sized objects like UserDicts into scalar slots of + # an ndarary. + indexer = np.asarray(indexer) + msg = ( + "Index is out of bounds or cannot do a " + "non-empty take from an empty array." + ) + + if allow_fill: + if fill_value is None: + fill_value = self.dtype.na_value + # bounds check + if (indexer < -1).any(): + raise ValueError + try: + output = [ + self.data[loc] if loc != -1 else fill_value for loc in indexer + ] + except IndexError as err: + raise IndexError(msg) from err + else: + try: + output = [self.data[loc] for loc in indexer] + except IndexError as err: + raise IndexError(msg) from err + + return self._from_sequence(output) + + def copy(self): + return type(self)(self.data[:]) + + def astype(self, dtype, copy=True): + if isinstance(dtype, type(self.dtype)) and dtype == self.dtype: + if copy: + return self.copy() + return self + elif is_string_dtype(dtype) and not is_object_dtype(dtype): + # numpy has problems with astype(str) for nested elements + return np.array([str(x) for x in self.data], dtype=dtype) + elif not copy: + return np.asarray(self.data, dtype=dtype) + else: + return np.array(self.data, dtype=dtype, copy=copy) + + @classmethod + def _concat_same_type(cls, to_concat): + data = np.concatenate([x.data for x in to_concat]) + return cls(data) + + +def make_data(): + # TODO: Use a regular dict. See _NDFrameIndexer._setitem_with_indexer + rng = np.random.default_rng(2) + data = np.empty(100, dtype=object) + data[:] = [ + [rng.choice(list(string.ascii_letters)) for _ in range(rng.integers(0, 10))] + for _ in range(100) + ] + return data diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/list/test_list.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/list/test_list.py new file mode 100644 index 0000000000000000000000000000000000000000..ac396cd3c60d435d34f95d5027d80d116d4560d5 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/list/test_list.py @@ -0,0 +1,33 @@ +import pytest + +import pandas as pd +from pandas.tests.extension.list.array import ( + ListArray, + ListDtype, + make_data, +) + + +@pytest.fixture +def dtype(): + return ListDtype() + + +@pytest.fixture +def data(): + """Length-100 ListArray for semantics test.""" + data = make_data() + + while len(data[0]) == len(data[1]): + data = make_data() + + return ListArray(data) + + +def test_to_csv(data): + # https://github.com/pandas-dev/pandas/issues/28840 + # array with list-likes fail when doing astype(str) on the numpy array + # which was done in get_values_for_csv + df = pd.DataFrame({"a": data}) + res = df.to_csv() + assert str(data[0]) in res diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_arrow.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_arrow.py new file mode 100644 index 0000000000000000000000000000000000000000..479497497a2ea3cfb1434da98469ceeeaa3565d6 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_arrow.py @@ -0,0 +1,3425 @@ +""" +This file contains a minimal set of tests for compliance with the extension +array interface test suite, and should contain no other tests. +The test suite for the full functionality of the array is located in +`pandas/tests/arrays/`. +The tests in this file are inherited from the BaseExtensionTests, and only +minimal tweaks should be applied to get the tests passing (by overwriting a +parent method). +Additional tests should either be added to one of the BaseExtensionTests +classes (if they are relevant for the extension interface for all dtypes), or +be added to the array-specific tests in `pandas/tests/arrays/`. +""" +from __future__ import annotations + +from datetime import ( + date, + datetime, + time, + timedelta, +) +from decimal import Decimal +from io import ( + BytesIO, + StringIO, +) +import operator +import pickle +import re + +import numpy as np +import pytest + +from pandas._libs import lib +from pandas._libs.tslibs import timezones +from pandas.compat import ( + PY311, + PY312, + is_ci_environment, + is_platform_windows, + pa_version_under11p0, + pa_version_under13p0, + pa_version_under14p0, + pa_version_under20p0, + pa_version_under21p0, +) + +from pandas.core.dtypes.dtypes import ( + ArrowDtype, + CategoricalDtypeType, +) + +import pandas as pd +import pandas._testing as tm +from pandas.api.extensions import no_default +from pandas.api.types import ( + is_bool_dtype, + is_float_dtype, + is_integer_dtype, + is_numeric_dtype, + is_signed_integer_dtype, + is_string_dtype, + is_unsigned_integer_dtype, +) +from pandas.tests.extension import base + +pa = pytest.importorskip("pyarrow") + +from pandas.core.arrays.arrow.array import ArrowExtensionArray +from pandas.core.arrays.arrow.extension_types import ArrowPeriodType + + +def _require_timezone_database(request): + if is_platform_windows() and is_ci_environment(): + mark = pytest.mark.xfail( + raises=pa.ArrowInvalid, + reason=( + "TODO: Set ARROW_TIMEZONE_DATABASE environment variable " + "on CI to path to the tzdata for pyarrow." + ), + ) + request.applymarker(mark) + + +@pytest.fixture(params=tm.ALL_PYARROW_DTYPES, ids=str) +def dtype(request): + return ArrowDtype(pyarrow_dtype=request.param) + + +@pytest.fixture +def data(dtype): + pa_dtype = dtype.pyarrow_dtype + if pa.types.is_boolean(pa_dtype): + data = [True, False] * 4 + [None] + [True, False] * 44 + [None] + [True, False] + elif pa.types.is_floating(pa_dtype): + data = [1.0, 0.0] * 4 + [None] + [-2.0, -1.0] * 44 + [None] + [0.5, 99.5] + elif pa.types.is_signed_integer(pa_dtype): + data = [1, 0] * 4 + [None] + [-2, -1] * 44 + [None] + [1, 99] + elif pa.types.is_unsigned_integer(pa_dtype): + data = [1, 0] * 4 + [None] + [2, 1] * 44 + [None] + [1, 99] + elif pa.types.is_decimal(pa_dtype): + data = ( + [Decimal("1"), Decimal("0.0")] * 4 + + [None] + + [Decimal("-2.0"), Decimal("-1.0")] * 44 + + [None] + + [Decimal("0.5"), Decimal("33.123")] + ) + elif pa.types.is_date(pa_dtype): + data = ( + [date(2022, 1, 1), date(1999, 12, 31)] * 4 + + [None] + + [date(2022, 1, 1), date(2022, 1, 1)] * 44 + + [None] + + [date(1999, 12, 31), date(1999, 12, 31)] + ) + elif pa.types.is_timestamp(pa_dtype): + data = ( + [datetime(2020, 1, 1, 1, 1, 1, 1), datetime(1999, 1, 1, 1, 1, 1, 1)] * 4 + + [None] + + [datetime(2020, 1, 1, 1), datetime(1999, 1, 1, 1)] * 44 + + [None] + + [datetime(2020, 1, 1), datetime(1999, 1, 1)] + ) + elif pa.types.is_duration(pa_dtype): + data = ( + [timedelta(1), timedelta(1, 1)] * 4 + + [None] + + [timedelta(-1), timedelta(0)] * 44 + + [None] + + [timedelta(-10), timedelta(10)] + ) + elif pa.types.is_time(pa_dtype): + data = ( + [time(12, 0), time(0, 12)] * 4 + + [None] + + [time(0, 0), time(1, 1)] * 44 + + [None] + + [time(0, 5), time(5, 0)] + ) + elif pa.types.is_string(pa_dtype): + data = ["a", "b"] * 4 + [None] + ["1", "2"] * 44 + [None] + ["!", ">"] + elif pa.types.is_binary(pa_dtype): + data = [b"a", b"b"] * 4 + [None] + [b"1", b"2"] * 44 + [None] + [b"!", b">"] + else: + raise NotImplementedError + return pd.array(data, dtype=dtype) + + +@pytest.fixture +def data_missing(data): + """Length-2 array with [NA, Valid]""" + return type(data)._from_sequence([None, data[0]], dtype=data.dtype) + + +@pytest.fixture(params=["data", "data_missing"]) +def all_data(request, data, data_missing): + """Parametrized fixture returning 'data' or 'data_missing' integer arrays. + + Used to test dtype conversion with and without missing values. + """ + if request.param == "data": + return data + elif request.param == "data_missing": + return data_missing + + +@pytest.fixture +def data_for_grouping(dtype): + """ + Data for factorization, grouping, and unique tests. + + Expected to be like [B, B, NA, NA, A, A, B, C] + + Where A < B < C and NA is missing + """ + pa_dtype = dtype.pyarrow_dtype + if pa.types.is_boolean(pa_dtype): + A = False + B = True + C = True + elif pa.types.is_floating(pa_dtype): + A = -1.1 + B = 0.0 + C = 1.1 + elif pa.types.is_signed_integer(pa_dtype): + A = -1 + B = 0 + C = 1 + elif pa.types.is_unsigned_integer(pa_dtype): + A = 0 + B = 1 + C = 10 + elif pa.types.is_date(pa_dtype): + A = date(1999, 12, 31) + B = date(2010, 1, 1) + C = date(2022, 1, 1) + elif pa.types.is_timestamp(pa_dtype): + A = datetime(1999, 1, 1, 1, 1, 1, 1) + B = datetime(2020, 1, 1) + C = datetime(2020, 1, 1, 1) + elif pa.types.is_duration(pa_dtype): + A = timedelta(-1) + B = timedelta(0) + C = timedelta(1, 4) + elif pa.types.is_time(pa_dtype): + A = time(0, 0) + B = time(0, 12) + C = time(12, 12) + elif pa.types.is_string(pa_dtype): + A = "a" + B = "b" + C = "c" + elif pa.types.is_binary(pa_dtype): + A = b"a" + B = b"b" + C = b"c" + elif pa.types.is_decimal(pa_dtype): + A = Decimal("-1.1") + B = Decimal("0.0") + C = Decimal("1.1") + else: + raise NotImplementedError + return pd.array([B, B, None, None, A, A, B, C], dtype=dtype) + + +@pytest.fixture +def data_for_sorting(data_for_grouping): + """ + Length-3 array with a known sort order. + + This should be three items [B, C, A] with + A < B < C + """ + return type(data_for_grouping)._from_sequence( + [data_for_grouping[0], data_for_grouping[7], data_for_grouping[4]], + dtype=data_for_grouping.dtype, + ) + + +@pytest.fixture +def data_missing_for_sorting(data_for_grouping): + """ + Length-3 array with a known sort order. + + This should be three items [B, NA, A] with + A < B and NA missing. + """ + return type(data_for_grouping)._from_sequence( + [data_for_grouping[0], data_for_grouping[2], data_for_grouping[4]], + dtype=data_for_grouping.dtype, + ) + + +@pytest.fixture +def data_for_twos(data): + """Length-100 array in which all the elements are two.""" + pa_dtype = data.dtype.pyarrow_dtype + if ( + pa.types.is_integer(pa_dtype) + or pa.types.is_floating(pa_dtype) + or pa.types.is_decimal(pa_dtype) + or pa.types.is_duration(pa_dtype) + ): + return pd.array([2] * 100, dtype=data.dtype) + # tests will be xfailed where 2 is not a valid scalar for pa_dtype + return data + # TODO: skip otherwise? + + +class TestArrowArray(base.ExtensionTests): + def test_compare_scalar(self, data, comparison_op): + ser = pd.Series(data) + self._compare_other(ser, data, comparison_op, data[0]) + + @pytest.mark.parametrize("na_action", [None, "ignore"]) + def test_map(self, data_missing, na_action): + if data_missing.dtype.kind in "mM": + result = data_missing.map(lambda x: x, na_action=na_action) + expected = data_missing.to_numpy(dtype=object) + tm.assert_numpy_array_equal(result, expected) + else: + result = data_missing.map(lambda x: x, na_action=na_action) + if data_missing.dtype == "float32[pyarrow]": + # map roundtrips through objects, which converts to float64 + expected = data_missing.to_numpy(dtype="float64", na_value=np.nan) + else: + expected = data_missing.to_numpy() + tm.assert_numpy_array_equal(result, expected) + + def test_astype_str(self, data, request, using_infer_string): + pa_dtype = data.dtype.pyarrow_dtype + if pa.types.is_binary(pa_dtype): + request.applymarker( + pytest.mark.xfail( + reason=f"For {pa_dtype} .astype(str) decodes.", + ) + ) + elif not using_infer_string and ( + (pa.types.is_timestamp(pa_dtype) and pa_dtype.tz is None) + or pa.types.is_duration(pa_dtype) + ): + request.applymarker( + pytest.mark.xfail( + reason="pd.Timestamp/pd.Timedelta repr different from numpy repr", + ) + ) + super().test_astype_str(data) + + def test_from_dtype(self, data, request): + pa_dtype = data.dtype.pyarrow_dtype + if pa.types.is_string(pa_dtype) or pa.types.is_decimal(pa_dtype): + if pa.types.is_string(pa_dtype): + reason = "ArrowDtype(pa.string()) != StringDtype('pyarrow')" + else: + reason = f"pyarrow.type_for_alias cannot infer {pa_dtype}" + + request.applymarker( + pytest.mark.xfail( + reason=reason, + ) + ) + super().test_from_dtype(data) + + def test_from_sequence_pa_array(self, data): + # https://github.com/pandas-dev/pandas/pull/47034#discussion_r955500784 + # data._pa_array = pa.ChunkedArray + result = type(data)._from_sequence(data._pa_array, dtype=data.dtype) + tm.assert_extension_array_equal(result, data) + assert isinstance(result._pa_array, pa.ChunkedArray) + + result = type(data)._from_sequence( + data._pa_array.combine_chunks(), dtype=data.dtype + ) + tm.assert_extension_array_equal(result, data) + assert isinstance(result._pa_array, pa.ChunkedArray) + + def test_from_sequence_pa_array_notimplemented(self, request): + with pytest.raises(NotImplementedError, match="Converting strings to"): + ArrowExtensionArray._from_sequence_of_strings( + ["12-1"], dtype=pa.month_day_nano_interval() + ) + + def test_from_sequence_of_strings_pa_array(self, data, request): + pa_dtype = data.dtype.pyarrow_dtype + if pa.types.is_time64(pa_dtype) and pa_dtype.equals("time64[ns]") and not PY311: + request.applymarker( + pytest.mark.xfail( + reason="Nanosecond time parsing not supported.", + ) + ) + elif pa_version_under11p0 and ( + pa.types.is_duration(pa_dtype) or pa.types.is_decimal(pa_dtype) + ): + request.applymarker( + pytest.mark.xfail( + raises=pa.ArrowNotImplementedError, + reason=f"pyarrow doesn't support parsing {pa_dtype}", + ) + ) + elif pa.types.is_timestamp(pa_dtype) and pa_dtype.tz is not None: + _require_timezone_database(request) + + pa_array = data._pa_array.cast(pa.string()) + result = type(data)._from_sequence_of_strings(pa_array, dtype=data.dtype) + tm.assert_extension_array_equal(result, data) + + pa_array = pa_array.combine_chunks() + result = type(data)._from_sequence_of_strings(pa_array, dtype=data.dtype) + tm.assert_extension_array_equal(result, data) + + def check_accumulate(self, ser, op_name, skipna): + result = getattr(ser, op_name)(skipna=skipna) + + pa_type = ser.dtype.pyarrow_dtype + if pa.types.is_temporal(pa_type): + # Just check that we match the integer behavior. + if pa_type.bit_width == 32: + int_type = "int32[pyarrow]" + else: + int_type = "int64[pyarrow]" + ser = ser.astype(int_type) + result = result.astype(int_type) + + result = result.astype("Float64") + expected = getattr(ser.astype("Float64"), op_name)(skipna=skipna) + tm.assert_series_equal(result, expected, check_dtype=False) + + def _supports_accumulation(self, ser: pd.Series, op_name: str) -> bool: + # error: Item "dtype[Any]" of "dtype[Any] | ExtensionDtype" has no + # attribute "pyarrow_dtype" + pa_type = ser.dtype.pyarrow_dtype # type: ignore[union-attr] + + if pa.types.is_binary(pa_type) or pa.types.is_decimal(pa_type): + if op_name in ["cumsum", "cumprod", "cummax", "cummin"]: + return False + elif pa.types.is_string(pa_type): + if op_name == "cumprod": + return False + elif pa.types.is_boolean(pa_type): + if op_name in ["cumprod", "cummax", "cummin"]: + return False + elif pa.types.is_temporal(pa_type): + if op_name == "cumsum" and not pa.types.is_duration(pa_type): + return False + elif op_name == "cumprod": + return False + return True + + @pytest.mark.parametrize("skipna", [True, False]) + def test_accumulate_series(self, data, all_numeric_accumulations, skipna, request): + pa_type = data.dtype.pyarrow_dtype + op_name = all_numeric_accumulations + + if pa.types.is_string(pa_type) and op_name in ["cumsum", "cummin", "cummax"]: + # https://github.com/pandas-dev/pandas/pull/60633 + # Doesn't fit test structure, tested in series/test_cumulative.py instead. + return + + ser = pd.Series(data) + + if not self._supports_accumulation(ser, op_name): + # The base class test will check that we raise + return super().test_accumulate_series( + data, all_numeric_accumulations, skipna + ) + + if pa_version_under13p0 and all_numeric_accumulations != "cumsum": + # xfailing takes a long time to run because pytest + # renders the exception messages even when not showing them + opt = request.config.option + if opt.markexpr and "not slow" in opt.markexpr: + pytest.skip( + f"{all_numeric_accumulations} not implemented for pyarrow < 9" + ) + mark = pytest.mark.xfail( + reason=f"{all_numeric_accumulations} not implemented for pyarrow < 9" + ) + request.applymarker(mark) + + elif all_numeric_accumulations == "cumsum" and ( + pa.types.is_boolean(pa_type) or pa.types.is_decimal(pa_type) + ): + request.applymarker( + pytest.mark.xfail( + reason=f"{all_numeric_accumulations} not implemented for {pa_type}", + raises=TypeError, + ) + ) + + self.check_accumulate(ser, op_name, skipna) + + def _supports_reduction(self, ser: pd.Series, op_name: str) -> bool: + if op_name == "kurt" or (pa_version_under20p0 and op_name == "skew"): + return False + + dtype = ser.dtype + # error: Item "dtype[Any]" of "dtype[Any] | ExtensionDtype" has + # no attribute "pyarrow_dtype" + pa_dtype = dtype.pyarrow_dtype # type: ignore[union-attr] + if pa.types.is_temporal(pa_dtype) and op_name in [ + "sum", + "var", + "skew", + "kurt", + "prod", + ]: + if pa.types.is_duration(pa_dtype) and op_name in ["sum"]: + # summing timedeltas is one case that *is* well-defined + pass + else: + return False + elif pa.types.is_binary(pa_dtype) and op_name in ["sum", "skew"]: + return False + elif ( + pa.types.is_string(pa_dtype) or pa.types.is_binary(pa_dtype) + ) and op_name in [ + "mean", + "median", + "prod", + "std", + "sem", + "var", + "skew", + "kurt", + ]: + return False + + if ( + pa.types.is_temporal(pa_dtype) + and not pa.types.is_duration(pa_dtype) + and op_name in ["any", "all"] + ): + # xref GH#34479 we support this in our non-pyarrow datetime64 dtypes, + # but it isn't obvious we _should_. For now, we keep the pyarrow + # behavior which does not support this. + return False + + return True + + def check_reduce(self, ser: pd.Series, op_name: str, skipna: bool): + # error: Item "dtype[Any]" of "dtype[Any] | ExtensionDtype" has no + # attribute "pyarrow_dtype" + pa_dtype = ser.dtype.pyarrow_dtype # type: ignore[union-attr] + if pa.types.is_integer(pa_dtype) or pa.types.is_floating(pa_dtype): + alt = ser.astype("Float64") + else: + # TODO: in the opposite case, aren't we testing... nothing? For + # e.g. date/time dtypes trying to calculate 'expected' by converting + # to object will raise for mean, std etc + alt = ser + + # TODO: in the opposite case, aren't we testing... nothing? + if op_name == "count": + result = getattr(ser, op_name)() + expected = getattr(alt, op_name)() + else: + result = getattr(ser, op_name)(skipna=skipna) + expected = getattr(alt, op_name)(skipna=skipna) + tm.assert_almost_equal(result, expected) + + @pytest.mark.parametrize("skipna", [True, False]) + def test_reduce_series_numeric(self, data, all_numeric_reductions, skipna, request): + dtype = data.dtype + pa_dtype = dtype.pyarrow_dtype + + xfail_mark = pytest.mark.xfail( + raises=TypeError, + reason=( + f"{all_numeric_reductions} is not implemented in " + f"pyarrow={pa.__version__} for {pa_dtype}" + ), + ) + if pa.types.is_boolean(pa_dtype) and all_numeric_reductions in { + "sem", + "std", + "var", + "median", + }: + request.applymarker(xfail_mark) + elif ( + not pa_version_under20p0 + and all_numeric_reductions == "skew" + and ( + pa.types.is_boolean(pa_dtype) + or ( + skipna + and ( + pa.types.is_integer(pa_dtype) or pa.types.is_floating(pa_dtype) + ) + ) + ) + ): + request.applymarker( + pytest.mark.xfail( + reason="https://github.com/apache/arrow/issues/45733", + ) + ) + super().test_reduce_series_numeric(data, all_numeric_reductions, skipna) + + @pytest.mark.parametrize("skipna", [True, False]) + def test_reduce_series_boolean( + self, data, all_boolean_reductions, skipna, na_value, request + ): + pa_dtype = data.dtype.pyarrow_dtype + xfail_mark = pytest.mark.xfail( + raises=TypeError, + reason=( + f"{all_boolean_reductions} is not implemented in " + f"pyarrow={pa.__version__} for {pa_dtype}" + ), + ) + if pa.types.is_string(pa_dtype) or pa.types.is_binary(pa_dtype): + # We *might* want to make this behave like the non-pyarrow cases, + # but have not yet decided. + request.applymarker(xfail_mark) + + return super().test_reduce_series_boolean(data, all_boolean_reductions, skipna) + + def _get_expected_reduction_dtype(self, arr, op_name: str, skipna: bool): + pa_type = arr._pa_array.type + if op_name in ["max", "min"]: + cmp_dtype = arr.dtype + elif arr.dtype.name == "decimal128(7, 3)[pyarrow]": + if op_name == "sum" and not pa_version_under21p0: + # https://github.com/apache/arrow/pull/44184 + cmp_dtype = ArrowDtype(pa.decimal128(38, 3)) + elif op_name not in ["median", "var", "std", "skew"]: + cmp_dtype = arr.dtype + else: + cmp_dtype = "float64[pyarrow]" + elif op_name in ["median", "var", "std", "mean", "skew"]: + cmp_dtype = "float64[pyarrow]" + elif op_name == "sum" and pa.types.is_string(pa_type): + cmp_dtype = arr.dtype + else: + cmp_dtype = { + "i": "int64[pyarrow]", + "u": "uint64[pyarrow]", + "f": "float64[pyarrow]", + }[arr.dtype.kind] + return cmp_dtype + + @pytest.mark.parametrize("skipna", [True, False]) + def test_reduce_frame(self, data, all_numeric_reductions, skipna, request): + op_name = all_numeric_reductions + if op_name == "skew" and pa_version_under20p0: + if data.dtype._is_numeric: + mark = pytest.mark.xfail(reason="skew not implemented") + request.applymarker(mark) + return super().test_reduce_frame(data, all_numeric_reductions, skipna) + + @pytest.mark.parametrize("typ", ["int64", "uint64", "float64"]) + def test_median_not_approximate(self, typ): + # GH 52679 + result = pd.Series([1, 2], dtype=f"{typ}[pyarrow]").median() + assert result == 1.5 + + def test_construct_from_string_own_name(self, dtype, request): + pa_dtype = dtype.pyarrow_dtype + if pa.types.is_decimal(pa_dtype): + request.applymarker( + pytest.mark.xfail( + raises=NotImplementedError, + reason=f"pyarrow.type_for_alias cannot infer {pa_dtype}", + ) + ) + + if pa.types.is_string(pa_dtype): + # We still support StringDtype('pyarrow') over ArrowDtype(pa.string()) + msg = r"string\[pyarrow\] should be constructed by StringDtype" + with pytest.raises(TypeError, match=msg): + dtype.construct_from_string(dtype.name) + + return + + super().test_construct_from_string_own_name(dtype) + + def test_is_dtype_from_name(self, dtype, request): + pa_dtype = dtype.pyarrow_dtype + if pa.types.is_string(pa_dtype): + # We still support StringDtype('pyarrow') over ArrowDtype(pa.string()) + assert not type(dtype).is_dtype(dtype.name) + else: + if pa.types.is_decimal(pa_dtype): + request.applymarker( + pytest.mark.xfail( + raises=NotImplementedError, + reason=f"pyarrow.type_for_alias cannot infer {pa_dtype}", + ) + ) + super().test_is_dtype_from_name(dtype) + + def test_construct_from_string_another_type_raises(self, dtype): + msg = r"'another_type' must end with '\[pyarrow\]'" + with pytest.raises(TypeError, match=msg): + type(dtype).construct_from_string("another_type") + + def test_get_common_dtype(self, dtype, request): + pa_dtype = dtype.pyarrow_dtype + if ( + pa.types.is_date(pa_dtype) + or pa.types.is_time(pa_dtype) + or (pa.types.is_timestamp(pa_dtype) and pa_dtype.tz is not None) + or pa.types.is_binary(pa_dtype) + or pa.types.is_decimal(pa_dtype) + ): + request.applymarker( + pytest.mark.xfail( + reason=( + f"{pa_dtype} does not have associated numpy " + f"dtype findable by find_common_type" + ) + ) + ) + super().test_get_common_dtype(dtype) + + def test_is_not_string_type(self, dtype): + pa_dtype = dtype.pyarrow_dtype + if pa.types.is_string(pa_dtype): + assert is_string_dtype(dtype) + else: + super().test_is_not_string_type(dtype) + + @pytest.mark.xfail( + reason="GH 45419: pyarrow.ChunkedArray does not support views.", run=False + ) + def test_view(self, data): + super().test_view(data) + + def test_fillna_no_op_returns_copy(self, data): + data = data[~data.isna()] + + valid = data[0] + result = data.fillna(valid) + assert result is not data + tm.assert_extension_array_equal(result, data) + + result = data.fillna(method="backfill") + assert result is not data + tm.assert_extension_array_equal(result, data) + + @pytest.mark.xfail( + reason="GH 45419: pyarrow.ChunkedArray does not support views", run=False + ) + def test_transpose(self, data): + super().test_transpose(data) + + @pytest.mark.xfail( + reason="GH 45419: pyarrow.ChunkedArray does not support views", run=False + ) + def test_setitem_preserves_views(self, data): + super().test_setitem_preserves_views(data) + + @pytest.mark.parametrize("dtype_backend", ["pyarrow", no_default]) + @pytest.mark.parametrize("engine", ["c", "python"]) + def test_EA_types(self, engine, data, dtype_backend, request): + pa_dtype = data.dtype.pyarrow_dtype + if pa.types.is_decimal(pa_dtype): + request.applymarker( + pytest.mark.xfail( + raises=NotImplementedError, + reason=f"Parameterized types {pa_dtype} not supported.", + ) + ) + elif pa.types.is_timestamp(pa_dtype) and pa_dtype.unit in ("us", "ns"): + request.applymarker( + pytest.mark.xfail( + raises=ValueError, + reason="https://github.com/pandas-dev/pandas/issues/49767", + ) + ) + elif pa.types.is_binary(pa_dtype): + request.applymarker( + pytest.mark.xfail(reason="CSV parsers don't correctly handle binary") + ) + df = pd.DataFrame({"with_dtype": pd.Series(data, dtype=str(data.dtype))}) + csv_output = df.to_csv(index=False, na_rep=np.nan) + if pa.types.is_binary(pa_dtype): + csv_output = BytesIO(csv_output) + else: + csv_output = StringIO(csv_output) + result = pd.read_csv( + csv_output, + dtype={"with_dtype": str(data.dtype)}, + engine=engine, + dtype_backend=dtype_backend, + ) + expected = df + tm.assert_frame_equal(result, expected) + + def test_invert(self, data, request): + pa_dtype = data.dtype.pyarrow_dtype + if not ( + pa.types.is_boolean(pa_dtype) + or pa.types.is_integer(pa_dtype) + or pa.types.is_string(pa_dtype) + ): + request.applymarker( + pytest.mark.xfail( + raises=pa.ArrowNotImplementedError, + reason=f"pyarrow.compute.invert does support {pa_dtype}", + ) + ) + if PY312 and pa.types.is_boolean(pa_dtype): + with tm.assert_produces_warning( + DeprecationWarning, match="Bitwise inversion", check_stacklevel=False + ): + super().test_invert(data) + else: + super().test_invert(data) + + @pytest.mark.parametrize("periods", [1, -2]) + def test_diff(self, data, periods, request): + pa_dtype = data.dtype.pyarrow_dtype + if pa.types.is_unsigned_integer(pa_dtype) and periods == 1: + request.applymarker( + pytest.mark.xfail( + raises=pa.ArrowInvalid, + reason=( + f"diff with {pa_dtype} and periods={periods} will overflow" + ), + ) + ) + super().test_diff(data, periods) + + def test_value_counts_returns_pyarrow_int64(self, data): + # GH 51462 + data = data[:10] + result = data.value_counts() + assert result.dtype == ArrowDtype(pa.int64()) + + _combine_le_expected_dtype = "bool[pyarrow]" + + def get_op_from_name(self, op_name): + short_opname = op_name.strip("_") + if short_opname == "rtruediv": + # use the numpy version that won't raise on division by zero + + def rtruediv(x, y): + return np.divide(y, x) + + return rtruediv + elif short_opname == "rfloordiv": + return lambda x, y: np.floor_divide(y, x) + + return tm.get_op_from_name(op_name) + + def _cast_pointwise_result(self, op_name: str, obj, other, pointwise_result): + # BaseOpsUtil._combine can upcast expected dtype + # (because it generates expected on python scalars) + # while ArrowExtensionArray maintains original type + expected = pointwise_result + + if op_name in ["eq", "ne", "lt", "le", "gt", "ge"]: + return pointwise_result.astype("boolean[pyarrow]") + + was_frame = False + if isinstance(expected, pd.DataFrame): + was_frame = True + expected_data = expected.iloc[:, 0] + original_dtype = obj.iloc[:, 0].dtype + else: + expected_data = expected + original_dtype = obj.dtype + + orig_pa_type = original_dtype.pyarrow_dtype + if not was_frame and isinstance(other, pd.Series): + # i.e. test_arith_series_with_array + if not ( + pa.types.is_floating(orig_pa_type) + or ( + pa.types.is_integer(orig_pa_type) + and op_name not in ["__truediv__", "__rtruediv__"] + ) + or pa.types.is_duration(orig_pa_type) + or pa.types.is_timestamp(orig_pa_type) + or pa.types.is_date(orig_pa_type) + or pa.types.is_decimal(orig_pa_type) + ): + # base class _combine always returns int64, while + # ArrowExtensionArray does not upcast + return expected + elif not ( + (op_name == "__floordiv__" and pa.types.is_integer(orig_pa_type)) + or pa.types.is_duration(orig_pa_type) + or pa.types.is_timestamp(orig_pa_type) + or pa.types.is_date(orig_pa_type) + or pa.types.is_decimal(orig_pa_type) + ): + # base class _combine always returns int64, while + # ArrowExtensionArray does not upcast + return expected + + pa_expected = pa.array(expected_data._values) + + if pa.types.is_duration(pa_expected.type): + if pa.types.is_date(orig_pa_type): + if pa.types.is_date64(orig_pa_type): + # TODO: why is this different vs date32? + unit = "ms" + else: + unit = "s" + else: + # pyarrow sees sequence of datetime/timedelta objects and defaults + # to "us" but the non-pointwise op retains unit + # timestamp or duration + unit = orig_pa_type.unit + if type(other) in [datetime, timedelta] and unit in ["s", "ms"]: + # pydatetime/pytimedelta objects have microsecond reso, so we + # take the higher reso of the original and microsecond. Note + # this matches what we would do with DatetimeArray/TimedeltaArray + unit = "us" + + pa_expected = pa_expected.cast(f"duration[{unit}]") + + elif pa.types.is_decimal(pa_expected.type) and pa.types.is_decimal( + orig_pa_type + ): + # decimal precision can resize in the result type depending on data + # just compare the float values + alt = getattr(obj, op_name)(other) + alt_dtype = tm.get_dtype(alt) + assert isinstance(alt_dtype, ArrowDtype) + if op_name == "__pow__" and isinstance(other, Decimal): + # TODO: would it make more sense to retain Decimal here? + alt_dtype = ArrowDtype(pa.float64()) + elif ( + op_name == "__pow__" + and isinstance(other, pd.Series) + and other.dtype == original_dtype + ): + # TODO: would it make more sense to retain Decimal here? + alt_dtype = ArrowDtype(pa.float64()) + else: + assert pa.types.is_decimal(alt_dtype.pyarrow_dtype) + return expected.astype(alt_dtype) + + else: + pa_expected = pa_expected.cast(orig_pa_type) + + pd_expected = type(expected_data._values)(pa_expected) + if was_frame: + expected = pd.DataFrame( + pd_expected, index=expected.index, columns=expected.columns + ) + else: + expected = pd.Series(pd_expected) + return expected + + def _is_temporal_supported(self, opname, pa_dtype): + return ( + ( + opname in ("__add__", "__radd__") + or ( + opname + in ("__truediv__", "__rtruediv__", "__floordiv__", "__rfloordiv__") + and not pa_version_under14p0 + ) + ) + and pa.types.is_duration(pa_dtype) + or opname in ("__sub__", "__rsub__") + and pa.types.is_temporal(pa_dtype) + ) + + def _get_expected_exception( + self, op_name: str, obj, other + ) -> type[Exception] | tuple[type[Exception], ...] | None: + if op_name in ("__divmod__", "__rdivmod__"): + return (NotImplementedError, TypeError) + + exc: type[Exception] | tuple[type[Exception], ...] | None + dtype = tm.get_dtype(obj) + # error: Item "dtype[Any]" of "dtype[Any] | ExtensionDtype" has no + # attribute "pyarrow_dtype" + pa_dtype = dtype.pyarrow_dtype # type: ignore[union-attr] + + arrow_temporal_supported = self._is_temporal_supported(op_name, pa_dtype) + if op_name in { + "__mod__", + "__rmod__", + }: + exc = (NotImplementedError, TypeError) + elif arrow_temporal_supported: + exc = None + elif op_name in ["__add__", "__radd__"] and ( + pa.types.is_string(pa_dtype) or pa.types.is_binary(pa_dtype) + ): + exc = None + elif not ( + pa.types.is_floating(pa_dtype) + or pa.types.is_integer(pa_dtype) + or pa.types.is_decimal(pa_dtype) + ): + exc = TypeError + else: + exc = None + return exc + + def _get_arith_xfail_marker(self, opname, pa_dtype): + mark = None + + arrow_temporal_supported = self._is_temporal_supported(opname, pa_dtype) + + if opname == "__rpow__" and ( + pa.types.is_floating(pa_dtype) + or pa.types.is_integer(pa_dtype) + or pa.types.is_decimal(pa_dtype) + ): + mark = pytest.mark.xfail( + reason=( + f"GH#29997: 1**pandas.NA == 1 while 1**pyarrow.NA == NULL " + f"for {pa_dtype}" + ) + ) + elif arrow_temporal_supported and ( + pa.types.is_time(pa_dtype) + or ( + opname + in ("__truediv__", "__rtruediv__", "__floordiv__", "__rfloordiv__") + and pa.types.is_duration(pa_dtype) + ) + ): + mark = pytest.mark.xfail( + raises=TypeError, + reason=( + f"{opname} not supported between" + f"pd.NA and {pa_dtype} Python scalar" + ), + ) + elif opname == "__rfloordiv__" and ( + pa.types.is_integer(pa_dtype) or pa.types.is_decimal(pa_dtype) + ): + mark = pytest.mark.xfail( + raises=pa.ArrowInvalid, + reason="divide by 0", + ) + elif opname == "__rtruediv__" and pa.types.is_decimal(pa_dtype): + mark = pytest.mark.xfail( + raises=pa.ArrowInvalid, + reason="divide by 0", + ) + + return mark + + def test_arith_series_with_scalar(self, data, all_arithmetic_operators, request): + pa_dtype = data.dtype.pyarrow_dtype + + if all_arithmetic_operators == "__rmod__" and pa.types.is_binary(pa_dtype): + pytest.skip("Skip testing Python string formatting") + + mark = self._get_arith_xfail_marker(all_arithmetic_operators, pa_dtype) + if mark is not None: + request.applymarker(mark) + + super().test_arith_series_with_scalar(data, all_arithmetic_operators) + + def test_arith_frame_with_scalar(self, data, all_arithmetic_operators, request): + pa_dtype = data.dtype.pyarrow_dtype + + if all_arithmetic_operators == "__rmod__" and ( + pa.types.is_string(pa_dtype) or pa.types.is_binary(pa_dtype) + ): + pytest.skip("Skip testing Python string formatting") + + mark = self._get_arith_xfail_marker(all_arithmetic_operators, pa_dtype) + if mark is not None: + request.applymarker(mark) + + super().test_arith_frame_with_scalar(data, all_arithmetic_operators) + + def test_arith_series_with_array(self, data, all_arithmetic_operators, request): + pa_dtype = data.dtype.pyarrow_dtype + + if all_arithmetic_operators in ( + "__sub__", + "__rsub__", + ) and pa.types.is_unsigned_integer(pa_dtype): + request.applymarker( + pytest.mark.xfail( + raises=pa.ArrowInvalid, + reason=( + f"Implemented pyarrow.compute.subtract_checked " + f"which raises on overflow for {pa_dtype}" + ), + ) + ) + + mark = self._get_arith_xfail_marker(all_arithmetic_operators, pa_dtype) + if mark is not None: + request.applymarker(mark) + + op_name = all_arithmetic_operators + ser = pd.Series(data) + # pd.Series([ser.iloc[0]] * len(ser)) may not return ArrowExtensionArray + # since ser.iloc[0] is a python scalar + other = pd.Series(pd.array([ser.iloc[0]] * len(ser), dtype=data.dtype)) + + self.check_opname(ser, op_name, other) + + def test_add_series_with_extension_array(self, data, request): + pa_dtype = data.dtype.pyarrow_dtype + + if pa_dtype.equals("int8"): + request.applymarker( + pytest.mark.xfail( + raises=pa.ArrowInvalid, + reason=f"raises on overflow for {pa_dtype}", + ) + ) + super().test_add_series_with_extension_array(data) + + def test_invalid_other_comp(self, data, comparison_op): + # GH 48833 + with pytest.raises( + NotImplementedError, match=".* not implemented for " + ): + comparison_op(data, object()) + + @pytest.mark.parametrize("masked_dtype", ["boolean", "Int64", "Float64"]) + def test_comp_masked_numpy(self, masked_dtype, comparison_op): + # GH 52625 + data = [1, 0, None] + ser_masked = pd.Series(data, dtype=masked_dtype) + ser_pa = pd.Series(data, dtype=f"{masked_dtype.lower()}[pyarrow]") + result = comparison_op(ser_pa, ser_masked) + if comparison_op in [operator.lt, operator.gt, operator.ne]: + exp = [False, False, None] + else: + exp = [True, True, None] + expected = pd.Series(exp, dtype=ArrowDtype(pa.bool_())) + tm.assert_series_equal(result, expected) + + +class TestLogicalOps: + """Various Series and DataFrame logical ops methods.""" + + def test_kleene_or(self): + a = pd.Series([True] * 3 + [False] * 3 + [None] * 3, dtype="boolean[pyarrow]") + b = pd.Series([True, False, None] * 3, dtype="boolean[pyarrow]") + result = a | b + expected = pd.Series( + [True, True, True, True, False, None, True, None, None], + dtype="boolean[pyarrow]", + ) + tm.assert_series_equal(result, expected) + + result = b | a + tm.assert_series_equal(result, expected) + + # ensure we haven't mutated anything inplace + tm.assert_series_equal( + a, + pd.Series([True] * 3 + [False] * 3 + [None] * 3, dtype="boolean[pyarrow]"), + ) + tm.assert_series_equal( + b, pd.Series([True, False, None] * 3, dtype="boolean[pyarrow]") + ) + + @pytest.mark.parametrize( + "other, expected", + [ + (None, [True, None, None]), + (pd.NA, [True, None, None]), + (True, [True, True, True]), + (np.bool_(True), [True, True, True]), + (False, [True, False, None]), + (np.bool_(False), [True, False, None]), + ], + ) + def test_kleene_or_scalar(self, other, expected): + a = pd.Series([True, False, None], dtype="boolean[pyarrow]") + result = a | other + expected = pd.Series(expected, dtype="boolean[pyarrow]") + tm.assert_series_equal(result, expected) + + result = other | a + tm.assert_series_equal(result, expected) + + # ensure we haven't mutated anything inplace + tm.assert_series_equal( + a, pd.Series([True, False, None], dtype="boolean[pyarrow]") + ) + + def test_kleene_and(self): + a = pd.Series([True] * 3 + [False] * 3 + [None] * 3, dtype="boolean[pyarrow]") + b = pd.Series([True, False, None] * 3, dtype="boolean[pyarrow]") + result = a & b + expected = pd.Series( + [True, False, None, False, False, False, None, False, None], + dtype="boolean[pyarrow]", + ) + tm.assert_series_equal(result, expected) + + result = b & a + tm.assert_series_equal(result, expected) + + # ensure we haven't mutated anything inplace + tm.assert_series_equal( + a, + pd.Series([True] * 3 + [False] * 3 + [None] * 3, dtype="boolean[pyarrow]"), + ) + tm.assert_series_equal( + b, pd.Series([True, False, None] * 3, dtype="boolean[pyarrow]") + ) + + @pytest.mark.parametrize( + "other, expected", + [ + (None, [None, False, None]), + (pd.NA, [None, False, None]), + (True, [True, False, None]), + (False, [False, False, False]), + (np.bool_(True), [True, False, None]), + (np.bool_(False), [False, False, False]), + ], + ) + def test_kleene_and_scalar(self, other, expected): + a = pd.Series([True, False, None], dtype="boolean[pyarrow]") + result = a & other + expected = pd.Series(expected, dtype="boolean[pyarrow]") + tm.assert_series_equal(result, expected) + + result = other & a + tm.assert_series_equal(result, expected) + + # ensure we haven't mutated anything inplace + tm.assert_series_equal( + a, pd.Series([True, False, None], dtype="boolean[pyarrow]") + ) + + def test_kleene_xor(self): + a = pd.Series([True] * 3 + [False] * 3 + [None] * 3, dtype="boolean[pyarrow]") + b = pd.Series([True, False, None] * 3, dtype="boolean[pyarrow]") + result = a ^ b + expected = pd.Series( + [False, True, None, True, False, None, None, None, None], + dtype="boolean[pyarrow]", + ) + tm.assert_series_equal(result, expected) + + result = b ^ a + tm.assert_series_equal(result, expected) + + # ensure we haven't mutated anything inplace + tm.assert_series_equal( + a, + pd.Series([True] * 3 + [False] * 3 + [None] * 3, dtype="boolean[pyarrow]"), + ) + tm.assert_series_equal( + b, pd.Series([True, False, None] * 3, dtype="boolean[pyarrow]") + ) + + @pytest.mark.parametrize( + "other, expected", + [ + (None, [None, None, None]), + (pd.NA, [None, None, None]), + (True, [False, True, None]), + (np.bool_(True), [False, True, None]), + (np.bool_(False), [True, False, None]), + ], + ) + def test_kleene_xor_scalar(self, other, expected): + a = pd.Series([True, False, None], dtype="boolean[pyarrow]") + result = a ^ other + expected = pd.Series(expected, dtype="boolean[pyarrow]") + tm.assert_series_equal(result, expected) + + result = other ^ a + tm.assert_series_equal(result, expected) + + # ensure we haven't mutated anything inplace + tm.assert_series_equal( + a, pd.Series([True, False, None], dtype="boolean[pyarrow]") + ) + + @pytest.mark.parametrize( + "op, exp", + [ + ["__and__", True], + ["__or__", True], + ["__xor__", False], + ], + ) + def test_logical_masked_numpy(self, op, exp): + # GH 52625 + data = [True, False, None] + ser_masked = pd.Series(data, dtype="boolean") + ser_pa = pd.Series(data, dtype="boolean[pyarrow]") + result = getattr(ser_pa, op)(ser_masked) + expected = pd.Series([exp, False, None], dtype=ArrowDtype(pa.bool_())) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("pa_type", tm.ALL_INT_PYARROW_DTYPES) +def test_bitwise(pa_type): + # GH 54495 + dtype = ArrowDtype(pa_type) + left = pd.Series([1, None, 3, 4], dtype=dtype) + right = pd.Series([None, 3, 5, 4], dtype=dtype) + + result = left | right + expected = pd.Series([None, None, 3 | 5, 4 | 4], dtype=dtype) + tm.assert_series_equal(result, expected) + + result = left & right + expected = pd.Series([None, None, 3 & 5, 4 & 4], dtype=dtype) + tm.assert_series_equal(result, expected) + + result = left ^ right + expected = pd.Series([None, None, 3 ^ 5, 4 ^ 4], dtype=dtype) + tm.assert_series_equal(result, expected) + + result = ~left + expected = ~(left.fillna(0).to_numpy()) + expected = pd.Series(expected, dtype=dtype).mask(left.isnull()) + tm.assert_series_equal(result, expected) + + +def test_arrowdtype_construct_from_string_type_with_unsupported_parameters(): + with pytest.raises(NotImplementedError, match="Passing pyarrow type"): + ArrowDtype.construct_from_string("not_a_real_dype[s, tz=UTC][pyarrow]") + + with pytest.raises(NotImplementedError, match="Passing pyarrow type"): + ArrowDtype.construct_from_string("decimal(7, 2)[pyarrow]") + + +def test_arrowdtype_construct_from_string_supports_dt64tz(): + # as of GH#50689, timestamptz is supported + dtype = ArrowDtype.construct_from_string("timestamp[s, tz=UTC][pyarrow]") + expected = ArrowDtype(pa.timestamp("s", "UTC")) + assert dtype == expected + + +def test_arrowdtype_construct_from_string_type_only_one_pyarrow(): + # GH#51225 + invalid = "int64[pyarrow]foobar[pyarrow]" + msg = ( + r"Passing pyarrow type specific parameters \(\[pyarrow\]\) in the " + r"string is not supported\." + ) + with pytest.raises(NotImplementedError, match=msg): + pd.Series(range(3), dtype=invalid) + + +def test_arrow_string_multiplication(): + # GH 56537 + binary = pd.Series(["abc", "defg"], dtype=ArrowDtype(pa.string())) + repeat = pd.Series([2, -2], dtype="int64[pyarrow]") + result = binary * repeat + expected = pd.Series(["abcabc", ""], dtype=ArrowDtype(pa.string())) + tm.assert_series_equal(result, expected) + reflected_result = repeat * binary + tm.assert_series_equal(result, reflected_result) + + +def test_arrow_string_multiplication_scalar_repeat(): + binary = pd.Series(["abc", "defg"], dtype=ArrowDtype(pa.string())) + result = binary * 2 + expected = pd.Series(["abcabc", "defgdefg"], dtype=ArrowDtype(pa.string())) + tm.assert_series_equal(result, expected) + reflected_result = 2 * binary + tm.assert_series_equal(reflected_result, expected) + + +@pytest.mark.parametrize( + "interpolation", ["linear", "lower", "higher", "nearest", "midpoint"] +) +@pytest.mark.parametrize("quantile", [0.5, [0.5, 0.5]]) +def test_quantile(data, interpolation, quantile, request): + pa_dtype = data.dtype.pyarrow_dtype + + data = data.take([0, 0, 0]) + ser = pd.Series(data) + + if ( + pa.types.is_string(pa_dtype) + or pa.types.is_binary(pa_dtype) + or pa.types.is_boolean(pa_dtype) + ): + # For string, bytes, and bool, we don't *expect* to have quantile work + # Note this matches the non-pyarrow behavior + msg = r"Function 'quantile' has no kernel matching input types \(.*\)" + with pytest.raises(pa.ArrowNotImplementedError, match=msg): + ser.quantile(q=quantile, interpolation=interpolation) + return + + if ( + pa.types.is_integer(pa_dtype) + or pa.types.is_floating(pa_dtype) + or pa.types.is_decimal(pa_dtype) + ): + pass + elif pa.types.is_temporal(data._pa_array.type): + pass + else: + request.applymarker( + pytest.mark.xfail( + raises=pa.ArrowNotImplementedError, + reason=f"quantile not supported by pyarrow for {pa_dtype}", + ) + ) + data = data.take([0, 0, 0]) + ser = pd.Series(data) + result = ser.quantile(q=quantile, interpolation=interpolation) + + if pa.types.is_timestamp(pa_dtype) and interpolation not in ["lower", "higher"]: + # rounding error will make the check below fail + # (e.g. '2020-01-01 01:01:01.000001' vs '2020-01-01 01:01:01.000001024'), + # so we'll check for now that we match the numpy analogue + if pa_dtype.tz: + pd_dtype = f"M8[{pa_dtype.unit}, {pa_dtype.tz}]" + else: + pd_dtype = f"M8[{pa_dtype.unit}]" + ser_np = ser.astype(pd_dtype) + + expected = ser_np.quantile(q=quantile, interpolation=interpolation) + if quantile == 0.5: + if pa_dtype.unit == "us": + expected = expected.to_pydatetime(warn=False) + assert result == expected + else: + if pa_dtype.unit == "us": + expected = expected.dt.floor("us") + tm.assert_series_equal(result, expected.astype(data.dtype)) + return + + if quantile == 0.5: + assert result == data[0] + else: + # Just check the values + expected = pd.Series(data.take([0, 0]), index=[0.5, 0.5]) + if ( + pa.types.is_integer(pa_dtype) + or pa.types.is_floating(pa_dtype) + or pa.types.is_decimal(pa_dtype) + ): + expected = expected.astype("float64[pyarrow]") + result = result.astype("float64[pyarrow]") + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "take_idx, exp_idx", + [[[0, 0, 2, 2, 4, 4], [4, 0]], [[0, 0, 0, 2, 4, 4], [0]]], + ids=["multi_mode", "single_mode"], +) +def test_mode_dropna_true(data_for_grouping, take_idx, exp_idx): + data = data_for_grouping.take(take_idx) + ser = pd.Series(data) + result = ser.mode(dropna=True) + expected = pd.Series(data_for_grouping.take(exp_idx)) + tm.assert_series_equal(result, expected) + + +def test_mode_dropna_false_mode_na(data): + # GH 50982 + more_nans = pd.Series([None, None, data[0]], dtype=data.dtype) + result = more_nans.mode(dropna=False) + expected = pd.Series([None], dtype=data.dtype) + tm.assert_series_equal(result, expected) + + expected = pd.Series([data[0], None], dtype=data.dtype) + result = expected.mode(dropna=False) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "arrow_dtype, expected_type", + [ + [pa.binary(), bytes], + [pa.binary(16), bytes], + [pa.large_binary(), bytes], + [pa.large_string(), str], + [pa.list_(pa.int64()), list], + [pa.large_list(pa.int64()), list], + [pa.map_(pa.string(), pa.int64()), list], + [pa.struct([("f1", pa.int8()), ("f2", pa.string())]), dict], + [pa.dictionary(pa.int64(), pa.int64()), CategoricalDtypeType], + ], +) +def test_arrow_dtype_type(arrow_dtype, expected_type): + # GH 51845 + # TODO: Redundant with test_getitem_scalar once arrow_dtype exists in data fixture + assert ArrowDtype(arrow_dtype).type == expected_type + + +def test_is_bool_dtype(): + # GH 22667 + data = ArrowExtensionArray(pa.array([True, False, True])) + assert is_bool_dtype(data) + assert pd.core.common.is_bool_indexer(data) + s = pd.Series(range(len(data))) + result = s[data] + expected = s[np.asarray(data)] + tm.assert_series_equal(result, expected) + + +def test_is_numeric_dtype(data): + # GH 50563 + pa_type = data.dtype.pyarrow_dtype + if ( + pa.types.is_floating(pa_type) + or pa.types.is_integer(pa_type) + or pa.types.is_decimal(pa_type) + ): + assert is_numeric_dtype(data) + else: + assert not is_numeric_dtype(data) + + +def test_is_integer_dtype(data): + # GH 50667 + pa_type = data.dtype.pyarrow_dtype + if pa.types.is_integer(pa_type): + assert is_integer_dtype(data) + else: + assert not is_integer_dtype(data) + + +def test_is_signed_integer_dtype(data): + pa_type = data.dtype.pyarrow_dtype + if pa.types.is_signed_integer(pa_type): + assert is_signed_integer_dtype(data) + else: + assert not is_signed_integer_dtype(data) + + +def test_is_unsigned_integer_dtype(data): + pa_type = data.dtype.pyarrow_dtype + if pa.types.is_unsigned_integer(pa_type): + assert is_unsigned_integer_dtype(data) + else: + assert not is_unsigned_integer_dtype(data) + + +def test_is_float_dtype(data): + pa_type = data.dtype.pyarrow_dtype + if pa.types.is_floating(pa_type): + assert is_float_dtype(data) + else: + assert not is_float_dtype(data) + + +def test_pickle_roundtrip(data): + # GH 42600 + expected = pd.Series(data) + expected_sliced = expected.head(2) + full_pickled = pickle.dumps(expected) + sliced_pickled = pickle.dumps(expected_sliced) + + assert len(full_pickled) > len(sliced_pickled) + + result = pickle.loads(full_pickled) + tm.assert_series_equal(result, expected) + + result_sliced = pickle.loads(sliced_pickled) + tm.assert_series_equal(result_sliced, expected_sliced) + + +def test_astype_from_non_pyarrow(data): + # GH49795 + pd_array = data._pa_array.to_pandas().array + result = pd_array.astype(data.dtype) + assert not isinstance(pd_array.dtype, ArrowDtype) + assert isinstance(result.dtype, ArrowDtype) + tm.assert_extension_array_equal(result, data) + + +def test_astype_float_from_non_pyarrow_str(): + # GH50430 + ser = pd.Series(["1.0"]) + result = ser.astype("float64[pyarrow]") + expected = pd.Series([1.0], dtype="float64[pyarrow]") + tm.assert_series_equal(result, expected) + + +def test_astype_errors_ignore(): + # GH 55399 + expected = pd.DataFrame({"col": [17000000]}, dtype="int32[pyarrow]") + result = expected.astype("float[pyarrow]", errors="ignore") + tm.assert_frame_equal(result, expected) + + +def test_to_numpy_with_defaults(data): + # GH49973 + result = data.to_numpy() + + pa_type = data._pa_array.type + if pa.types.is_duration(pa_type) or pa.types.is_timestamp(pa_type): + pytest.skip("Tested in test_to_numpy_temporal") + elif pa.types.is_date(pa_type): + expected = np.array(list(data)) + else: + expected = np.array(data._pa_array) + + if data._hasna and not is_numeric_dtype(data.dtype): + expected = expected.astype(object) + expected[pd.isna(data)] = pd.NA + + tm.assert_numpy_array_equal(result, expected) + + +def test_to_numpy_int_with_na(): + # GH51227: ensure to_numpy does not convert int to float + data = [1, None] + arr = pd.array(data, dtype="int64[pyarrow]") + result = arr.to_numpy() + expected = np.array([1, np.nan]) + assert isinstance(result[0], float) + tm.assert_numpy_array_equal(result, expected) + + +@pytest.mark.parametrize("na_val, exp", [(lib.no_default, np.nan), (1, 1)]) +def test_to_numpy_null_array(na_val, exp): + # GH#52443 + arr = pd.array([pd.NA, pd.NA], dtype="null[pyarrow]") + result = arr.to_numpy(dtype="float64", na_value=na_val) + expected = np.array([exp] * 2, dtype="float64") + tm.assert_numpy_array_equal(result, expected) + + +def test_to_numpy_null_array_no_dtype(): + # GH#52443 + arr = pd.array([pd.NA, pd.NA], dtype="null[pyarrow]") + result = arr.to_numpy(dtype=None) + expected = np.array([pd.NA] * 2, dtype="object") + tm.assert_numpy_array_equal(result, expected) + + +def test_to_numpy_without_dtype(): + # GH 54808 + arr = pd.array([True, pd.NA], dtype="boolean[pyarrow]") + result = arr.to_numpy(na_value=False) + expected = np.array([True, False], dtype=np.bool_) + tm.assert_numpy_array_equal(result, expected) + + arr = pd.array([1.0, pd.NA], dtype="float32[pyarrow]") + result = arr.to_numpy(na_value=0.0) + expected = np.array([1.0, 0.0], dtype=np.float32) + tm.assert_numpy_array_equal(result, expected) + + +def test_setitem_null_slice(data): + # GH50248 + orig = data.copy() + + result = orig.copy() + result[:] = data[0] + expected = ArrowExtensionArray._from_sequence( + [data[0]] * len(data), + dtype=data.dtype, + ) + tm.assert_extension_array_equal(result, expected) + + result = orig.copy() + result[:] = data[::-1] + expected = data[::-1] + tm.assert_extension_array_equal(result, expected) + + result = orig.copy() + result[:] = data.tolist() + expected = data + tm.assert_extension_array_equal(result, expected) + + +def test_setitem_invalid_dtype(data): + # GH50248 + pa_type = data._pa_array.type + if pa.types.is_string(pa_type) or pa.types.is_binary(pa_type): + fill_value = 123 + err = TypeError + msg = "Invalid value '123' for dtype" + elif ( + pa.types.is_integer(pa_type) + or pa.types.is_floating(pa_type) + or pa.types.is_boolean(pa_type) + ): + fill_value = "foo" + err = pa.ArrowInvalid + msg = "Could not convert" + else: + fill_value = "foo" + err = TypeError + msg = "Invalid value 'foo' for dtype" + with pytest.raises(err, match=msg): + data[:] = fill_value + + +def test_from_arrow_respecting_given_dtype(): + date_array = pa.array( + [pd.Timestamp("2019-12-31"), pd.Timestamp("2019-12-31")], type=pa.date32() + ) + result = date_array.to_pandas( + types_mapper={pa.date32(): ArrowDtype(pa.date64())}.get + ) + expected = pd.Series( + [pd.Timestamp("2019-12-31"), pd.Timestamp("2019-12-31")], + dtype=ArrowDtype(pa.date64()), + ) + tm.assert_series_equal(result, expected) + + +def test_from_arrow_respecting_given_dtype_unsafe(): + array = pa.array([1.5, 2.5], type=pa.float64()) + with tm.external_error_raised(pa.ArrowInvalid): + array.to_pandas(types_mapper={pa.float64(): ArrowDtype(pa.int64())}.get) + + +def test_round(): + dtype = "float64[pyarrow]" + + ser = pd.Series([0.0, 1.23, 2.56, pd.NA], dtype=dtype) + result = ser.round(1) + expected = pd.Series([0.0, 1.2, 2.6, pd.NA], dtype=dtype) + tm.assert_series_equal(result, expected) + + ser = pd.Series([123.4, pd.NA, 56.78], dtype=dtype) + result = ser.round(-1) + expected = pd.Series([120.0, pd.NA, 60.0], dtype=dtype) + tm.assert_series_equal(result, expected) + + +def test_searchsorted_with_na_raises(data_for_sorting, as_series): + # GH50447 + b, c, a = data_for_sorting + arr = data_for_sorting.take([2, 0, 1]) # to get [a, b, c] + arr[-1] = pd.NA + + if as_series: + arr = pd.Series(arr) + + msg = ( + "searchsorted requires array to be sorted, " + "which is impossible with NAs present." + ) + with pytest.raises(ValueError, match=msg): + arr.searchsorted(b) + + +def test_sort_values_dictionary(): + df = pd.DataFrame( + { + "a": pd.Series( + ["x", "y"], dtype=ArrowDtype(pa.dictionary(pa.int32(), pa.string())) + ), + "b": [1, 2], + }, + ) + expected = df.copy() + result = df.sort_values(by=["a", "b"]) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("pat", ["abc", "a[a-z]{2}"]) +def test_str_count(pat): + ser = pd.Series(["abc", None], dtype=ArrowDtype(pa.string())) + result = ser.str.count(pat) + expected = pd.Series([1, None], dtype=ArrowDtype(pa.int32())) + tm.assert_series_equal(result, expected) + + +def test_str_count_flags_unsupported(): + ser = pd.Series(["abc", None], dtype=ArrowDtype(pa.string())) + with pytest.raises(NotImplementedError, match="count not"): + ser.str.count("abc", flags=1) + + +@pytest.mark.parametrize( + "side, str_func", [["left", "rjust"], ["right", "ljust"], ["both", "center"]] +) +def test_str_pad(side, str_func): + ser = pd.Series(["a", None], dtype=ArrowDtype(pa.string())) + result = ser.str.pad(width=3, side=side, fillchar="x") + expected = pd.Series( + [getattr("a", str_func)(3, "x"), None], dtype=ArrowDtype(pa.string()) + ) + tm.assert_series_equal(result, expected) + + +def test_str_pad_invalid_side(): + ser = pd.Series(["a", None], dtype=ArrowDtype(pa.string())) + with pytest.raises(ValueError, match="Invalid side: foo"): + ser.str.pad(3, "foo", "x") + + +@pytest.mark.parametrize( + "pat, case, na, regex, exp", + [ + ["ab", False, None, False, [True, None]], + ["Ab", True, None, False, [False, None]], + ["ab", False, True, False, [True, True]], + ["a[a-z]{1}", False, None, True, [True, None]], + ["A[a-z]{1}", True, None, True, [False, None]], + ], +) +def test_str_contains(pat, case, na, regex, exp): + ser = pd.Series(["abc", None], dtype=ArrowDtype(pa.string())) + result = ser.str.contains(pat, case=case, na=na, regex=regex) + expected = pd.Series(exp, dtype=ArrowDtype(pa.bool_())) + tm.assert_series_equal(result, expected) + + +def test_str_contains_flags_unsupported(): + ser = pd.Series(["abc", None], dtype=ArrowDtype(pa.string())) + with pytest.raises(NotImplementedError, match="contains not"): + ser.str.contains("a", flags=1) + + +@pytest.mark.parametrize( + "side, pat, na, exp", + [ + ["startswith", "ab", None, [True, None, False]], + ["startswith", "b", False, [False, False, False]], + ["endswith", "b", True, [False, True, False]], + ["endswith", "bc", None, [True, None, False]], + ["startswith", ("a", "e", "g"), None, [True, None, True]], + ["endswith", ("a", "c", "g"), None, [True, None, True]], + ["startswith", (), None, [False, None, False]], + ["endswith", (), None, [False, None, False]], + ], +) +def test_str_start_ends_with(side, pat, na, exp): + ser = pd.Series(["abc", None, "efg"], dtype=ArrowDtype(pa.string())) + result = getattr(ser.str, side)(pat, na=na) + expected = pd.Series(exp, dtype=ArrowDtype(pa.bool_())) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("side", ("startswith", "endswith")) +def test_str_starts_ends_with_all_nulls_empty_tuple(side): + ser = pd.Series([None, None], dtype=ArrowDtype(pa.string())) + result = getattr(ser.str, side)(()) + + # bool datatype preserved for all nulls. + expected = pd.Series([None, None], dtype=ArrowDtype(pa.bool_())) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "arg_name, arg", + [["pat", re.compile("b")], ["repl", str], ["case", False], ["flags", 1]], +) +def test_str_replace_unsupported(arg_name, arg): + ser = pd.Series(["abc", None], dtype=ArrowDtype(pa.string())) + kwargs = {"pat": "b", "repl": "x", "regex": True} + kwargs[arg_name] = arg + with pytest.raises(NotImplementedError, match="replace is not supported"): + ser.str.replace(**kwargs) + + +@pytest.mark.parametrize( + "pat, repl, n, regex, exp", + [ + ["a", "x", -1, False, ["xbxc", None]], + ["a", "x", 1, False, ["xbac", None]], + ["[a-b]", "x", -1, True, ["xxxc", None]], + ], +) +def test_str_replace(pat, repl, n, regex, exp): + ser = pd.Series(["abac", None], dtype=ArrowDtype(pa.string())) + result = ser.str.replace(pat, repl, n=n, regex=regex) + expected = pd.Series(exp, dtype=ArrowDtype(pa.string())) + tm.assert_series_equal(result, expected) + + +def test_str_replace_negative_n(): + # GH 56404 + ser = pd.Series(["abc", "aaaaaa"], dtype=ArrowDtype(pa.string())) + actual = ser.str.replace("a", "", -3, True) + expected = pd.Series(["bc", ""], dtype=ArrowDtype(pa.string())) + tm.assert_series_equal(expected, actual) + + # Same bug for pyarrow-backed StringArray GH#59628 + ser2 = ser.astype(pd.StringDtype(storage="pyarrow")) + actual2 = ser2.str.replace("a", "", -3, True) + expected2 = expected.astype(ser2.dtype) + tm.assert_series_equal(expected2, actual2) + + ser3 = ser.astype(pd.StringDtype(storage="pyarrow", na_value=np.nan)) + actual3 = ser3.str.replace("a", "", -3, True) + expected3 = expected.astype(ser3.dtype) + tm.assert_series_equal(expected3, actual3) + + +def test_str_repeat_unsupported(): + ser = pd.Series(["abc", None], dtype=ArrowDtype(pa.string())) + with pytest.raises(NotImplementedError, match="repeat is not"): + ser.str.repeat([1, 2]) + + +def test_str_repeat(): + ser = pd.Series(["abc", None], dtype=ArrowDtype(pa.string())) + result = ser.str.repeat(2) + expected = pd.Series(["abcabc", None], dtype=ArrowDtype(pa.string())) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "pat, case, na, exp", + [ + ["ab", False, None, [True, None]], + ["Ab", True, None, [False, None]], + ["bc", True, None, [False, None]], + ["ab", False, True, [True, True]], + ["a[a-z]{1}", False, None, [True, None]], + ["A[a-z]{1}", True, None, [False, None]], + ], +) +def test_str_match(pat, case, na, exp): + ser = pd.Series(["abc", None], dtype=ArrowDtype(pa.string())) + result = ser.str.match(pat, case=case, na=na) + expected = pd.Series(exp, dtype=ArrowDtype(pa.bool_())) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "pat, case, na, exp", + # Note: keep cases in sync with + # pandas/tests/strings/test_find_replace.py::test_str_fullmatch_extra_cases + [ + ["abc", False, None, [True, False, False, None]], + ["Abc", True, None, [False, False, False, None]], + ["bc", True, None, [False, False, False, None]], + ["ab", False, None, [False, False, False, None]], + ["a[a-z]{2}", False, None, [True, False, False, None]], + ["A[a-z]{1}", True, None, [False, False, False, None]], + # GH Issue: #56652 + ["abc$", False, None, [True, False, False, None]], + ["abc\\$", False, None, [False, True, False, None]], + ["Abc$", True, None, [False, False, False, None]], + ["Abc\\$", True, None, [False, False, False, None]], + # https://github.com/pandas-dev/pandas/issues/61072 + ["(abc)|(abx)", True, None, [True, False, False, None]], + ["((abc)|(abx))", True, None, [True, False, False, None]], + ], +) +def test_str_fullmatch(pat, case, na, exp): + ser = pd.Series(["abc", "abc$", "$abc", None], dtype=ArrowDtype(pa.string())) + result = ser.str.fullmatch(pat, case=case, na=na) + expected = pd.Series(exp, dtype=ArrowDtype(pa.bool_())) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "sub, start, end, exp, exp_typ", + [["ab", 0, None, [0, None], pa.int32()], ["bc", 1, 3, [1, None], pa.int64()]], +) +def test_str_find(sub, start, end, exp, exp_typ): + ser = pd.Series(["abc", None], dtype=ArrowDtype(pa.string())) + result = ser.str.find(sub, start=start, end=end) + expected = pd.Series(exp, dtype=ArrowDtype(exp_typ)) + tm.assert_series_equal(result, expected) + + +def test_str_find_negative_start(): + # GH 56411 + ser = pd.Series(["abc", None], dtype=ArrowDtype(pa.string())) + result = ser.str.find(sub="b", start=-1000, end=3) + expected = pd.Series([1, None], dtype=ArrowDtype(pa.int64())) + tm.assert_series_equal(result, expected) + + +def test_str_find_no_end(): + ser = pd.Series(["abc", None], dtype=ArrowDtype(pa.string())) + result = ser.str.find("ab", start=1) + expected = pd.Series([-1, None], dtype="int64[pyarrow]") + tm.assert_series_equal(result, expected) + + +def test_str_find_negative_start_negative_end(): + # GH 56791 + ser = pd.Series(["abcdefg", None], dtype=ArrowDtype(pa.string())) + result = ser.str.find(sub="d", start=-6, end=-3) + expected = pd.Series([3, None], dtype=ArrowDtype(pa.int64())) + tm.assert_series_equal(result, expected) + + +def test_str_find_large_start(): + # GH 56791 + ser = pd.Series(["abcdefg", None], dtype=ArrowDtype(pa.string())) + result = ser.str.find(sub="d", start=16) + expected = pd.Series([-1, None], dtype=ArrowDtype(pa.int64())) + tm.assert_series_equal(result, expected) + + +@pytest.mark.skipif( + pa_version_under13p0, reason="https://github.com/apache/arrow/issues/36311" +) +@pytest.mark.parametrize("start", [-15, -3, 0, 1, 15, None]) +@pytest.mark.parametrize("end", [-15, -1, 0, 3, 15, None]) +@pytest.mark.parametrize("sub", ["", "az", "abce", "a", "caa"]) +def test_str_find_e2e(start, end, sub): + s = pd.Series( + ["abcaadef", "abc", "abcdeddefgj8292", "ab", "a", ""], + dtype=ArrowDtype(pa.string()), + ) + object_series = s.astype(pd.StringDtype(storage="python")) + result = s.str.find(sub, start, end) + expected = object_series.str.find(sub, start, end).astype(result.dtype) + tm.assert_series_equal(result, expected) + + arrow_str_series = s.astype(pd.StringDtype(storage="pyarrow")) + result2 = arrow_str_series.str.find(sub, start, end).astype(result.dtype) + tm.assert_series_equal(result2, expected) + + +def test_str_find_negative_start_negative_end_no_match(): + # GH 56791 + ser = pd.Series(["abcdefg", None], dtype=ArrowDtype(pa.string())) + result = ser.str.find(sub="d", start=-3, end=-6) + expected = pd.Series([-1, None], dtype=ArrowDtype(pa.int64())) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "i, exp", + [ + [1, ["b", "e", None]], + [-1, ["c", "e", None]], + [2, ["c", None, None]], + [-3, ["a", None, None]], + [4, [None, None, None]], + ], +) +def test_str_get(i, exp): + ser = pd.Series(["abc", "de", None], dtype=ArrowDtype(pa.string())) + result = ser.str.get(i) + expected = pd.Series(exp, dtype=ArrowDtype(pa.string())) + tm.assert_series_equal(result, expected) + + +@pytest.mark.xfail( + reason="TODO: StringMethods._validate should support Arrow list types", + raises=AttributeError, +) +def test_str_join(): + ser = pd.Series(ArrowExtensionArray(pa.array([list("abc"), list("123"), None]))) + result = ser.str.join("=") + expected = pd.Series(["a=b=c", "1=2=3", None], dtype=ArrowDtype(pa.string())) + tm.assert_series_equal(result, expected) + + +def test_str_join_string_type(): + ser = pd.Series(ArrowExtensionArray(pa.array(["abc", "123", None]))) + result = ser.str.join("=") + expected = pd.Series(["a=b=c", "1=2=3", None], dtype=ArrowDtype(pa.string())) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "start, stop, step, exp", + [ + [None, 2, None, ["ab", None]], + [None, 2, 1, ["ab", None]], + [1, 3, 1, ["bc", None]], + (None, None, -1, ["dcba", None]), + ], +) +def test_str_slice(start, stop, step, exp): + ser = pd.Series(["abcd", None], dtype=ArrowDtype(pa.string())) + result = ser.str.slice(start, stop, step) + expected = pd.Series(exp, dtype=ArrowDtype(pa.string())) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "start, stop, repl, exp", + [ + [1, 2, "x", ["axcd", None]], + [None, 2, "x", ["xcd", None]], + [None, 2, None, ["cd", None]], + ], +) +def test_str_slice_replace(start, stop, repl, exp): + ser = pd.Series(["abcd", None], dtype=ArrowDtype(pa.string())) + result = ser.str.slice_replace(start, stop, repl) + expected = pd.Series(exp, dtype=ArrowDtype(pa.string())) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "value, method, exp", + [ + ["a1c", "isalnum", True], + ["!|,", "isalnum", False], + ["aaa", "isalpha", True], + ["!!!", "isalpha", False], + ["٠", "isdecimal", True], # noqa: RUF001 + ["~!", "isdecimal", False], + ["2", "isdigit", True], + ["~", "isdigit", False], + ["aaa", "islower", True], + ["aaA", "islower", False], + ["123", "isnumeric", True], + ["11I", "isnumeric", False], + [" ", "isspace", True], + ["", "isspace", False], + ["The That", "istitle", True], + ["the That", "istitle", False], + ["AAA", "isupper", True], + ["AAc", "isupper", False], + ], +) +def test_str_is_functions(value, method, exp): + ser = pd.Series([value, None], dtype=ArrowDtype(pa.string())) + result = getattr(ser.str, method)() + expected = pd.Series([exp, None], dtype=ArrowDtype(pa.bool_())) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "method, exp", + [ + ["capitalize", "Abc def"], + ["title", "Abc Def"], + ["swapcase", "AbC Def"], + ["lower", "abc def"], + ["upper", "ABC DEF"], + ["casefold", "abc def"], + ], +) +def test_str_transform_functions(method, exp): + ser = pd.Series(["aBc dEF", None], dtype=ArrowDtype(pa.string())) + result = getattr(ser.str, method)() + expected = pd.Series([exp, None], dtype=ArrowDtype(pa.string())) + tm.assert_series_equal(result, expected) + + +def test_str_len(): + ser = pd.Series(["abcd", None], dtype=ArrowDtype(pa.string())) + result = ser.str.len() + expected = pd.Series([4, None], dtype=ArrowDtype(pa.int32())) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "method, to_strip, val", + [ + ["strip", None, " abc "], + ["strip", "x", "xabcx"], + ["lstrip", None, " abc"], + ["lstrip", "x", "xabc"], + ["rstrip", None, "abc "], + ["rstrip", "x", "abcx"], + ], +) +def test_str_strip(method, to_strip, val): + ser = pd.Series([val, None], dtype=ArrowDtype(pa.string())) + result = getattr(ser.str, method)(to_strip=to_strip) + expected = pd.Series(["abc", None], dtype=ArrowDtype(pa.string())) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("val", ["abc123", "abc"]) +def test_str_removesuffix(val): + ser = pd.Series([val, None], dtype=ArrowDtype(pa.string())) + result = ser.str.removesuffix("123") + expected = pd.Series(["abc", None], dtype=ArrowDtype(pa.string())) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("val", ["123abc", "abc"]) +def test_str_removeprefix(val): + ser = pd.Series([val, None], dtype=ArrowDtype(pa.string())) + result = ser.str.removeprefix("123") + expected = pd.Series(["abc", None], dtype=ArrowDtype(pa.string())) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("errors", ["ignore", "strict"]) +@pytest.mark.parametrize( + "encoding, exp", + [ + ["utf8", b"abc"], + ["utf32", b"\xff\xfe\x00\x00a\x00\x00\x00b\x00\x00\x00c\x00\x00\x00"], + ], +) +def test_str_encode(errors, encoding, exp): + ser = pd.Series(["abc", None], dtype=ArrowDtype(pa.string())) + result = ser.str.encode(encoding, errors) + expected = pd.Series([exp, None], dtype=ArrowDtype(pa.binary())) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("flags", [0, 2]) +def test_str_findall(flags): + ser = pd.Series(["abc", "efg", None], dtype=ArrowDtype(pa.string())) + result = ser.str.findall("b", flags=flags) + expected = pd.Series([["b"], [], None], dtype=ArrowDtype(pa.list_(pa.string()))) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("method", ["index", "rindex"]) +@pytest.mark.parametrize( + "start, end", + [ + [0, None], + [1, 4], + ], +) +def test_str_r_index(method, start, end): + ser = pd.Series(["abcba", None], dtype=ArrowDtype(pa.string())) + result = getattr(ser.str, method)("c", start, end) + expected = pd.Series([2, None], dtype=ArrowDtype(pa.int64())) + tm.assert_series_equal(result, expected) + + with pytest.raises(ValueError, match="substring not found"): + getattr(ser.str, method)("foo", start, end) + + +@pytest.mark.parametrize("form", ["NFC", "NFKC"]) +def test_str_normalize(form): + ser = pd.Series(["abc", None], dtype=ArrowDtype(pa.string())) + result = ser.str.normalize(form) + expected = ser.copy() + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "start, end", + [ + [0, None], + [1, 4], + ], +) +def test_str_rfind(start, end): + ser = pd.Series(["abcba", "foo", None], dtype=ArrowDtype(pa.string())) + result = ser.str.rfind("c", start, end) + expected = pd.Series([2, -1, None], dtype=ArrowDtype(pa.int64())) + tm.assert_series_equal(result, expected) + + +def test_str_translate(): + ser = pd.Series(["abcba", None], dtype=ArrowDtype(pa.string())) + result = ser.str.translate({97: "b"}) + expected = pd.Series(["bbcbb", None], dtype=ArrowDtype(pa.string())) + tm.assert_series_equal(result, expected) + + +def test_str_wrap(): + ser = pd.Series(["abcba", None], dtype=ArrowDtype(pa.string())) + result = ser.str.wrap(3) + expected = pd.Series(["abc\nba", None], dtype=ArrowDtype(pa.string())) + tm.assert_series_equal(result, expected) + + +def test_get_dummies(): + ser = pd.Series(["a|b", None, "a|c"], dtype=ArrowDtype(pa.string())) + result = ser.str.get_dummies() + expected = pd.DataFrame( + [[True, True, False], [False, False, False], [True, False, True]], + dtype=ArrowDtype(pa.bool_()), + columns=["a", "b", "c"], + ) + tm.assert_frame_equal(result, expected) + + +def test_str_partition(): + ser = pd.Series(["abcba", None], dtype=ArrowDtype(pa.string())) + result = ser.str.partition("b") + expected = pd.DataFrame( + [["a", "b", "cba"], [None, None, None]], dtype=ArrowDtype(pa.string()) + ) + tm.assert_frame_equal(result, expected) + + result = ser.str.partition("b", expand=False) + expected = pd.Series(ArrowExtensionArray(pa.array([["a", "b", "cba"], None]))) + tm.assert_series_equal(result, expected) + + result = ser.str.rpartition("b") + expected = pd.DataFrame( + [["abc", "b", "a"], [None, None, None]], dtype=ArrowDtype(pa.string()) + ) + tm.assert_frame_equal(result, expected) + + result = ser.str.rpartition("b", expand=False) + expected = pd.Series(ArrowExtensionArray(pa.array([["abc", "b", "a"], None]))) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("method", ["rsplit", "split"]) +def test_str_split_pat_none(method): + # GH 56271 + ser = pd.Series(["a1 cbc\nb", None], dtype=ArrowDtype(pa.string())) + result = getattr(ser.str, method)() + expected = pd.Series(ArrowExtensionArray(pa.array([["a1", "cbc", "b"], None]))) + tm.assert_series_equal(result, expected) + + +def test_str_split(): + # GH 52401 + ser = pd.Series(["a1cbcb", "a2cbcb", None], dtype=ArrowDtype(pa.string())) + result = ser.str.split("c") + expected = pd.Series( + ArrowExtensionArray(pa.array([["a1", "b", "b"], ["a2", "b", "b"], None])) + ) + tm.assert_series_equal(result, expected) + + result = ser.str.split("c", n=1) + expected = pd.Series( + ArrowExtensionArray(pa.array([["a1", "bcb"], ["a2", "bcb"], None])) + ) + tm.assert_series_equal(result, expected) + + result = ser.str.split("[1-2]", regex=True) + expected = pd.Series( + ArrowExtensionArray(pa.array([["a", "cbcb"], ["a", "cbcb"], None])) + ) + tm.assert_series_equal(result, expected) + + result = ser.str.split("[1-2]", regex=True, expand=True) + expected = pd.DataFrame( + { + 0: ArrowExtensionArray(pa.array(["a", "a", None])), + 1: ArrowExtensionArray(pa.array(["cbcb", "cbcb", None])), + } + ) + tm.assert_frame_equal(result, expected) + + result = ser.str.split("1", expand=True) + expected = pd.DataFrame( + { + 0: ArrowExtensionArray(pa.array(["a", "a2cbcb", None])), + 1: ArrowExtensionArray(pa.array(["cbcb", None, None])), + } + ) + tm.assert_frame_equal(result, expected) + + +def test_str_rsplit(): + # GH 52401 + ser = pd.Series(["a1cbcb", "a2cbcb", None], dtype=ArrowDtype(pa.string())) + result = ser.str.rsplit("c") + expected = pd.Series( + ArrowExtensionArray(pa.array([["a1", "b", "b"], ["a2", "b", "b"], None])) + ) + tm.assert_series_equal(result, expected) + + result = ser.str.rsplit("c", n=1) + expected = pd.Series( + ArrowExtensionArray(pa.array([["a1cb", "b"], ["a2cb", "b"], None])) + ) + tm.assert_series_equal(result, expected) + + result = ser.str.rsplit("c", n=1, expand=True) + expected = pd.DataFrame( + { + 0: ArrowExtensionArray(pa.array(["a1cb", "a2cb", None])), + 1: ArrowExtensionArray(pa.array(["b", "b", None])), + } + ) + tm.assert_frame_equal(result, expected) + + result = ser.str.rsplit("1", expand=True) + expected = pd.DataFrame( + { + 0: ArrowExtensionArray(pa.array(["a", "a2cbcb", None])), + 1: ArrowExtensionArray(pa.array(["cbcb", None, None])), + } + ) + tm.assert_frame_equal(result, expected) + + +def test_str_extract_non_symbolic(): + ser = pd.Series(["a1", "b2", "c3"], dtype=ArrowDtype(pa.string())) + with pytest.raises(ValueError, match="pat=.* must contain a symbolic group name."): + ser.str.extract(r"[ab](\d)") + + +@pytest.mark.parametrize("expand", [True, False]) +def test_str_extract(expand): + ser = pd.Series(["a1", "b2", "c3"], dtype=ArrowDtype(pa.string())) + result = ser.str.extract(r"(?P[ab])(?P\d)", expand=expand) + expected = pd.DataFrame( + { + "letter": ArrowExtensionArray(pa.array(["a", "b", None])), + "digit": ArrowExtensionArray(pa.array(["1", "2", None])), + } + ) + tm.assert_frame_equal(result, expected) + + +def test_str_extract_expand(): + ser = pd.Series(["a1", "b2", "c3"], dtype=ArrowDtype(pa.string())) + result = ser.str.extract(r"[ab](?P\d)", expand=True) + expected = pd.DataFrame( + { + "digit": ArrowExtensionArray(pa.array(["1", "2", None])), + } + ) + tm.assert_frame_equal(result, expected) + + result = ser.str.extract(r"[ab](?P\d)", expand=False) + expected = pd.Series(ArrowExtensionArray(pa.array(["1", "2", None])), name="digit") + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("unit", ["ns", "us", "ms", "s"]) +def test_duration_from_strings_with_nat(unit): + # GH51175 + strings = ["1000", "NaT"] + pa_type = pa.duration(unit) + result = ArrowExtensionArray._from_sequence_of_strings(strings, dtype=pa_type) + expected = ArrowExtensionArray(pa.array([1000, None], type=pa_type)) + tm.assert_extension_array_equal(result, expected) + + +def test_unsupported_dt(data): + pa_dtype = data.dtype.pyarrow_dtype + if not pa.types.is_temporal(pa_dtype): + with pytest.raises( + AttributeError, match="Can only use .dt accessor with datetimelike values" + ): + pd.Series(data).dt + + +@pytest.mark.parametrize( + "prop, expected", + [ + ["year", 2023], + ["day", 2], + ["day_of_week", 0], + ["dayofweek", 0], + ["weekday", 0], + ["day_of_year", 2], + ["dayofyear", 2], + ["hour", 3], + ["minute", 4], + ["is_leap_year", False], + ["microsecond", 5], + ["month", 1], + ["nanosecond", 6], + ["quarter", 1], + ["second", 7], + ["date", date(2023, 1, 2)], + ["time", time(3, 4, 7, 5)], + ], +) +def test_dt_properties(prop, expected): + ser = pd.Series( + [ + pd.Timestamp( + year=2023, + month=1, + day=2, + hour=3, + minute=4, + second=7, + microsecond=5, + nanosecond=6, + ), + None, + ], + dtype=ArrowDtype(pa.timestamp("ns")), + ) + result = getattr(ser.dt, prop) + exp_type = None + if isinstance(expected, date): + exp_type = pa.date32() + elif isinstance(expected, time): + exp_type = pa.time64("ns") + expected = pd.Series(ArrowExtensionArray(pa.array([expected, None], type=exp_type))) + tm.assert_series_equal(result, expected) + + +def test_dt_is_month_start_end(): + ser = pd.Series( + [ + datetime(year=2023, month=12, day=2, hour=3), + datetime(year=2023, month=1, day=1, hour=3), + datetime(year=2023, month=3, day=31, hour=3), + None, + ], + dtype=ArrowDtype(pa.timestamp("us")), + ) + result = ser.dt.is_month_start + expected = pd.Series([False, True, False, None], dtype=ArrowDtype(pa.bool_())) + tm.assert_series_equal(result, expected) + + result = ser.dt.is_month_end + expected = pd.Series([False, False, True, None], dtype=ArrowDtype(pa.bool_())) + tm.assert_series_equal(result, expected) + + +def test_dt_is_year_start_end(): + ser = pd.Series( + [ + datetime(year=2023, month=12, day=31, hour=3), + datetime(year=2023, month=1, day=1, hour=3), + datetime(year=2023, month=3, day=31, hour=3), + None, + ], + dtype=ArrowDtype(pa.timestamp("us")), + ) + result = ser.dt.is_year_start + expected = pd.Series([False, True, False, None], dtype=ArrowDtype(pa.bool_())) + tm.assert_series_equal(result, expected) + + result = ser.dt.is_year_end + expected = pd.Series([True, False, False, None], dtype=ArrowDtype(pa.bool_())) + tm.assert_series_equal(result, expected) + + +def test_dt_is_quarter_start_end(): + ser = pd.Series( + [ + datetime(year=2023, month=11, day=30, hour=3), + datetime(year=2023, month=1, day=1, hour=3), + datetime(year=2023, month=3, day=31, hour=3), + None, + ], + dtype=ArrowDtype(pa.timestamp("us")), + ) + result = ser.dt.is_quarter_start + expected = pd.Series([False, True, False, None], dtype=ArrowDtype(pa.bool_())) + tm.assert_series_equal(result, expected) + + result = ser.dt.is_quarter_end + expected = pd.Series([False, False, True, None], dtype=ArrowDtype(pa.bool_())) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("method", ["days_in_month", "daysinmonth"]) +def test_dt_days_in_month(method): + ser = pd.Series( + [ + datetime(year=2023, month=3, day=30, hour=3), + datetime(year=2023, month=4, day=1, hour=3), + datetime(year=2023, month=2, day=3, hour=3), + None, + ], + dtype=ArrowDtype(pa.timestamp("us")), + ) + result = getattr(ser.dt, method) + expected = pd.Series([31, 30, 28, None], dtype=ArrowDtype(pa.int64())) + tm.assert_series_equal(result, expected) + + +def test_dt_normalize(): + ser = pd.Series( + [ + datetime(year=2023, month=3, day=30), + datetime(year=2023, month=4, day=1, hour=3), + datetime(year=2023, month=2, day=3, hour=23, minute=59, second=59), + None, + ], + dtype=ArrowDtype(pa.timestamp("us")), + ) + result = ser.dt.normalize() + expected = pd.Series( + [ + datetime(year=2023, month=3, day=30), + datetime(year=2023, month=4, day=1), + datetime(year=2023, month=2, day=3), + None, + ], + dtype=ArrowDtype(pa.timestamp("us")), + ) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("unit", ["us", "ns"]) +def test_dt_time_preserve_unit(unit): + ser = pd.Series( + [datetime(year=2023, month=1, day=2, hour=3), None], + dtype=ArrowDtype(pa.timestamp(unit)), + ) + assert ser.dt.unit == unit + + result = ser.dt.time + expected = pd.Series( + ArrowExtensionArray(pa.array([time(3, 0), None], type=pa.time64(unit))) + ) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("tz", [None, "UTC", "US/Pacific"]) +def test_dt_tz(tz): + ser = pd.Series( + [datetime(year=2023, month=1, day=2, hour=3), None], + dtype=ArrowDtype(pa.timestamp("ns", tz=tz)), + ) + result = ser.dt.tz + assert result == timezones.maybe_get_tz(tz) + + +def test_dt_isocalendar(): + ser = pd.Series( + [datetime(year=2023, month=1, day=2, hour=3), None], + dtype=ArrowDtype(pa.timestamp("ns")), + ) + result = ser.dt.isocalendar() + expected = pd.DataFrame( + [[2023, 1, 1], [0, 0, 0]], + columns=["year", "week", "day"], + dtype="int64[pyarrow]", + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "method, exp", [["day_name", "Sunday"], ["month_name", "January"]] +) +def test_dt_day_month_name(method, exp, request): + # GH 52388 + _require_timezone_database(request) + + ser = pd.Series([datetime(2023, 1, 1), None], dtype=ArrowDtype(pa.timestamp("ms"))) + result = getattr(ser.dt, method)() + expected = pd.Series([exp, None], dtype=ArrowDtype(pa.string())) + tm.assert_series_equal(result, expected) + + +def test_dt_strftime(request): + _require_timezone_database(request) + + ser = pd.Series( + [datetime(year=2023, month=1, day=2, hour=3), None], + dtype=ArrowDtype(pa.timestamp("ns")), + ) + result = ser.dt.strftime("%Y-%m-%dT%H:%M:%S") + expected = pd.Series( + ["2023-01-02T03:00:00.000000000", None], dtype=ArrowDtype(pa.string()) + ) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("method", ["ceil", "floor", "round"]) +def test_dt_roundlike_tz_options_not_supported(method): + ser = pd.Series( + [datetime(year=2023, month=1, day=2, hour=3), None], + dtype=ArrowDtype(pa.timestamp("ns")), + ) + with pytest.raises(NotImplementedError, match="ambiguous is not supported."): + getattr(ser.dt, method)("1h", ambiguous="NaT") + + with pytest.raises(NotImplementedError, match="nonexistent is not supported."): + getattr(ser.dt, method)("1h", nonexistent="NaT") + + +@pytest.mark.parametrize("method", ["ceil", "floor", "round"]) +def test_dt_roundlike_unsupported_freq(method): + ser = pd.Series( + [datetime(year=2023, month=1, day=2, hour=3), None], + dtype=ArrowDtype(pa.timestamp("ns")), + ) + with pytest.raises(ValueError, match="freq='1B' is not supported"): + getattr(ser.dt, method)("1B") + + with pytest.raises(ValueError, match="Must specify a valid frequency: None"): + getattr(ser.dt, method)(None) + + +@pytest.mark.parametrize("freq", ["D", "h", "min", "s", "ms", "us", "ns"]) +@pytest.mark.parametrize("method", ["ceil", "floor", "round"]) +def test_dt_ceil_year_floor(freq, method): + ser = pd.Series( + [datetime(year=2023, month=1, day=1), None], + ) + pa_dtype = ArrowDtype(pa.timestamp("ns")) + expected = getattr(ser.dt, method)(f"1{freq}").astype(pa_dtype) + result = getattr(ser.astype(pa_dtype).dt, method)(f"1{freq}") + tm.assert_series_equal(result, expected) + + +def test_dt_to_pydatetime(): + # GH 51859 + data = [datetime(2022, 1, 1), datetime(2023, 1, 1)] + ser = pd.Series(data, dtype=ArrowDtype(pa.timestamp("ns"))) + + msg = "The behavior of ArrowTemporalProperties.to_pydatetime is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = ser.dt.to_pydatetime() + expected = np.array(data, dtype=object) + tm.assert_numpy_array_equal(result, expected) + assert all(type(res) is datetime for res in result) + + msg = "The behavior of DatetimeProperties.to_pydatetime is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = ser.astype("datetime64[ns]").dt.to_pydatetime() + tm.assert_numpy_array_equal(result, expected) + + +@pytest.mark.parametrize("date_type", [32, 64]) +def test_dt_to_pydatetime_date_error(date_type): + # GH 52812 + ser = pd.Series( + [date(2022, 12, 31)], + dtype=ArrowDtype(getattr(pa, f"date{date_type}")()), + ) + msg = "The behavior of ArrowTemporalProperties.to_pydatetime is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + with pytest.raises(ValueError, match="to_pydatetime cannot be called with"): + ser.dt.to_pydatetime() + + +def test_dt_tz_localize_unsupported_tz_options(): + ser = pd.Series( + [datetime(year=2023, month=1, day=2, hour=3), None], + dtype=ArrowDtype(pa.timestamp("ns")), + ) + with pytest.raises(NotImplementedError, match="ambiguous='NaT' is not supported"): + ser.dt.tz_localize("UTC", ambiguous="NaT") + + with pytest.raises(NotImplementedError, match="nonexistent='NaT' is not supported"): + ser.dt.tz_localize("UTC", nonexistent="NaT") + + +def test_dt_tz_localize_none(): + ser = pd.Series( + [datetime(year=2023, month=1, day=2, hour=3), None], + dtype=ArrowDtype(pa.timestamp("ns", tz="US/Pacific")), + ) + result = ser.dt.tz_localize(None) + expected = pd.Series( + [datetime(year=2023, month=1, day=2, hour=3), None], + dtype=ArrowDtype(pa.timestamp("ns")), + ) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("unit", ["us", "ns"]) +def test_dt_tz_localize(unit, request): + _require_timezone_database(request) + + ser = pd.Series( + [datetime(year=2023, month=1, day=2, hour=3), None], + dtype=ArrowDtype(pa.timestamp(unit)), + ) + result = ser.dt.tz_localize("US/Pacific") + exp_data = pa.array( + [datetime(year=2023, month=1, day=2, hour=3), None], type=pa.timestamp(unit) + ) + exp_data = pa.compute.assume_timezone(exp_data, "US/Pacific") + expected = pd.Series(ArrowExtensionArray(exp_data)) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "nonexistent, exp_date", + [ + ["shift_forward", datetime(year=2023, month=3, day=12, hour=3)], + ["shift_backward", pd.Timestamp("2023-03-12 01:59:59.999999999")], + ], +) +def test_dt_tz_localize_nonexistent(nonexistent, exp_date, request): + _require_timezone_database(request) + + ser = pd.Series( + [datetime(year=2023, month=3, day=12, hour=2, minute=30), None], + dtype=ArrowDtype(pa.timestamp("ns")), + ) + result = ser.dt.tz_localize("US/Pacific", nonexistent=nonexistent) + exp_data = pa.array([exp_date, None], type=pa.timestamp("ns")) + exp_data = pa.compute.assume_timezone(exp_data, "US/Pacific") + expected = pd.Series(ArrowExtensionArray(exp_data)) + tm.assert_series_equal(result, expected) + + +def test_dt_tz_convert_not_tz_raises(): + ser = pd.Series( + [datetime(year=2023, month=1, day=2, hour=3), None], + dtype=ArrowDtype(pa.timestamp("ns")), + ) + with pytest.raises(TypeError, match="Cannot convert tz-naive timestamps"): + ser.dt.tz_convert("UTC") + + +def test_dt_tz_convert_none(): + ser = pd.Series( + [datetime(year=2023, month=1, day=2, hour=3), None], + dtype=ArrowDtype(pa.timestamp("ns", "US/Pacific")), + ) + result = ser.dt.tz_convert(None) + expected = pd.Series( + [datetime(year=2023, month=1, day=2, hour=3), None], + dtype=ArrowDtype(pa.timestamp("ns")), + ) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("unit", ["us", "ns"]) +def test_dt_tz_convert(unit): + ser = pd.Series( + [datetime(year=2023, month=1, day=2, hour=3), None], + dtype=ArrowDtype(pa.timestamp(unit, "US/Pacific")), + ) + result = ser.dt.tz_convert("US/Eastern") + expected = pd.Series( + [datetime(year=2023, month=1, day=2, hour=3), None], + dtype=ArrowDtype(pa.timestamp(unit, "US/Eastern")), + ) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("dtype", ["timestamp[ms][pyarrow]", "duration[ms][pyarrow]"]) +def test_as_unit(dtype): + # GH 52284 + ser = pd.Series([1000, None], dtype=dtype) + result = ser.dt.as_unit("ns") + expected = ser.astype(dtype.replace("ms", "ns")) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "prop, expected", + [ + ["days", 1], + ["seconds", 2], + ["microseconds", 3], + ["nanoseconds", 4], + ], +) +def test_dt_timedelta_properties(prop, expected): + # GH 52284 + ser = pd.Series( + [ + pd.Timedelta( + days=1, + seconds=2, + microseconds=3, + nanoseconds=4, + ), + None, + ], + dtype=ArrowDtype(pa.duration("ns")), + ) + result = getattr(ser.dt, prop) + expected = pd.Series( + ArrowExtensionArray(pa.array([expected, None], type=pa.int32())) + ) + tm.assert_series_equal(result, expected) + + +def test_dt_timedelta_total_seconds(): + # GH 52284 + ser = pd.Series( + [ + pd.Timedelta( + days=1, + seconds=2, + microseconds=3, + nanoseconds=4, + ), + None, + ], + dtype=ArrowDtype(pa.duration("ns")), + ) + result = ser.dt.total_seconds() + expected = pd.Series( + ArrowExtensionArray(pa.array([86402.000003, None], type=pa.float64())) + ) + tm.assert_series_equal(result, expected) + + +def test_dt_to_pytimedelta(): + # GH 52284 + data = [timedelta(1, 2, 3), timedelta(1, 2, 4)] + ser = pd.Series(data, dtype=ArrowDtype(pa.duration("ns"))) + + result = ser.dt.to_pytimedelta() + expected = np.array(data, dtype=object) + tm.assert_numpy_array_equal(result, expected) + assert all(type(res) is timedelta for res in result) + + expected = ser.astype("timedelta64[ns]").dt.to_pytimedelta() + tm.assert_numpy_array_equal(result, expected) + + +def test_dt_components(): + # GH 52284 + ser = pd.Series( + [ + pd.Timedelta( + days=1, + seconds=2, + microseconds=3, + nanoseconds=4, + ), + None, + ], + dtype=ArrowDtype(pa.duration("ns")), + ) + result = ser.dt.components + expected = pd.DataFrame( + [[1, 0, 0, 2, 0, 3, 4], [None, None, None, None, None, None, None]], + columns=[ + "days", + "hours", + "minutes", + "seconds", + "milliseconds", + "microseconds", + "nanoseconds", + ], + dtype="int32[pyarrow]", + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("skipna", [True, False]) +def test_boolean_reduce_series_all_null(all_boolean_reductions, skipna): + # GH51624 + ser = pd.Series([None], dtype="float64[pyarrow]") + result = getattr(ser, all_boolean_reductions)(skipna=skipna) + if skipna: + expected = all_boolean_reductions == "all" + else: + expected = pd.NA + assert result is expected + + +def test_from_sequence_of_strings_boolean(): + true_strings = ["true", "TRUE", "True", "1", "1.0"] + false_strings = ["false", "FALSE", "False", "0", "0.0"] + nulls = [None] + strings = true_strings + false_strings + nulls + bools = ( + [True] * len(true_strings) + [False] * len(false_strings) + [None] * len(nulls) + ) + + result = ArrowExtensionArray._from_sequence_of_strings(strings, dtype=pa.bool_()) + expected = pd.array(bools, dtype="boolean[pyarrow]") + tm.assert_extension_array_equal(result, expected) + + strings = ["True", "foo"] + with pytest.raises(pa.ArrowInvalid, match="Failed to parse"): + ArrowExtensionArray._from_sequence_of_strings(strings, dtype=pa.bool_()) + + +def test_concat_empty_arrow_backed_series(dtype): + # GH#51734 + ser = pd.Series([], dtype=dtype) + expected = ser.copy() + result = pd.concat([ser[np.array([], dtype=np.bool_)]]) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("dtype", ["string", "string[pyarrow]"]) +def test_series_from_string_array(dtype): + arr = pa.array("the quick brown fox".split()) + ser = pd.Series(arr, dtype=dtype) + expected = pd.Series(ArrowExtensionArray(arr), dtype=dtype) + tm.assert_series_equal(ser, expected) + + +# _data was renamed to _pa_data +class OldArrowExtensionArray(ArrowExtensionArray): + def __getstate__(self): + state = super().__getstate__() + state["_data"] = state.pop("_pa_array") + return state + + +def test_pickle_old_arrowextensionarray(): + data = pa.array([1]) + expected = OldArrowExtensionArray(data) + result = pickle.loads(pickle.dumps(expected)) + tm.assert_extension_array_equal(result, expected) + assert result._pa_array == pa.chunked_array(data) + assert not hasattr(result, "_data") + + +def test_setitem_boolean_replace_with_mask_segfault(): + # GH#52059 + N = 145_000 + arr = ArrowExtensionArray(pa.chunked_array([np.ones((N,), dtype=np.bool_)])) + expected = arr.copy() + arr[np.zeros((N,), dtype=np.bool_)] = False + assert arr._pa_array == expected._pa_array + + +@pytest.mark.parametrize( + "data, arrow_dtype", + [ + ([b"a", b"b"], pa.large_binary()), + (["a", "b"], pa.large_string()), + ], +) +def test_conversion_large_dtypes_from_numpy_array(data, arrow_dtype): + dtype = ArrowDtype(arrow_dtype) + result = pd.array(np.array(data), dtype=dtype) + expected = pd.array(data, dtype=dtype) + tm.assert_extension_array_equal(result, expected) + + +def test_concat_null_array(): + df = pd.DataFrame({"a": [None, None]}, dtype=ArrowDtype(pa.null())) + df2 = pd.DataFrame({"a": [0, 1]}, dtype="int64[pyarrow]") + + result = pd.concat([df, df2], ignore_index=True) + expected = pd.DataFrame({"a": [None, None, 0, 1]}, dtype="int64[pyarrow]") + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("pa_type", tm.ALL_INT_PYARROW_DTYPES + tm.FLOAT_PYARROW_DTYPES) +def test_describe_numeric_data(pa_type): + # GH 52470 + data = pd.Series([1, 2, 3], dtype=ArrowDtype(pa_type)) + result = data.describe() + expected = pd.Series( + [3, 2, 1, 1, 1.5, 2.0, 2.5, 3], + dtype=ArrowDtype(pa.float64()), + index=["count", "mean", "std", "min", "25%", "50%", "75%", "max"], + ) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("pa_type", tm.TIMEDELTA_PYARROW_DTYPES) +def test_describe_timedelta_data(pa_type): + # GH53001 + data = pd.Series(range(1, 10), dtype=ArrowDtype(pa_type)) + result = data.describe() + expected = pd.Series( + [9] + pd.to_timedelta([5, 2, 1, 3, 5, 7, 9], unit=pa_type.unit).tolist(), + dtype=object, + index=["count", "mean", "std", "min", "25%", "50%", "75%", "max"], + ) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("pa_type", tm.DATETIME_PYARROW_DTYPES) +def test_describe_datetime_data(pa_type): + # GH53001 + data = pd.Series(range(1, 10), dtype=ArrowDtype(pa_type)) + result = data.describe() + expected = pd.Series( + [9] + + [ + pd.Timestamp(v, tz=pa_type.tz, unit=pa_type.unit) + for v in [5, 1, 3, 5, 7, 9] + ], + dtype=object, + index=["count", "mean", "min", "25%", "50%", "75%", "max"], + ) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "pa_type", tm.DATETIME_PYARROW_DTYPES + tm.TIMEDELTA_PYARROW_DTYPES +) +def test_quantile_temporal(pa_type): + # GH52678 + data = [1, 2, 3] + ser = pd.Series(data, dtype=ArrowDtype(pa_type)) + result = ser.quantile(0.1) + expected = ser[0] + assert result == expected + + +def test_date32_repr(): + # GH48238 + arrow_dt = pa.array([date.fromisoformat("2020-01-01")], type=pa.date32()) + ser = pd.Series(arrow_dt, dtype=ArrowDtype(arrow_dt.type)) + assert repr(ser) == "0 2020-01-01\ndtype: date32[day][pyarrow]" + + +def test_duration_overflow_from_ndarray_containing_nat(): + # GH52843 + data_ts = pd.to_datetime([1, None]) + data_td = pd.to_timedelta([1, None]) + ser_ts = pd.Series(data_ts, dtype=ArrowDtype(pa.timestamp("ns"))) + ser_td = pd.Series(data_td, dtype=ArrowDtype(pa.duration("ns"))) + result = ser_ts + ser_td + expected = pd.Series([2, None], dtype=ArrowDtype(pa.timestamp("ns"))) + tm.assert_series_equal(result, expected) + + +def test_infer_dtype_pyarrow_dtype(data, request): + res = lib.infer_dtype(data) + assert res != "unknown-array" + + if data._hasna and res in ["floating", "datetime64", "timedelta64"]: + mark = pytest.mark.xfail( + reason="in infer_dtype pd.NA is not ignored in these cases " + "even with skipna=True in the list(data) check below" + ) + request.applymarker(mark) + + assert res == lib.infer_dtype(list(data), skipna=True) + + +@pytest.mark.parametrize( + "pa_type", tm.DATETIME_PYARROW_DTYPES + tm.TIMEDELTA_PYARROW_DTYPES +) +def test_from_sequence_temporal(pa_type): + # GH 53171 + val = 3 + unit = pa_type.unit + if pa.types.is_duration(pa_type): + seq = [pd.Timedelta(val, unit=unit).as_unit(unit)] + else: + seq = [pd.Timestamp(val, unit=unit, tz=pa_type.tz).as_unit(unit)] + + result = ArrowExtensionArray._from_sequence(seq, dtype=pa_type) + expected = ArrowExtensionArray(pa.array([val], type=pa_type)) + tm.assert_extension_array_equal(result, expected) + + +@pytest.mark.parametrize( + "pa_type", tm.DATETIME_PYARROW_DTYPES + tm.TIMEDELTA_PYARROW_DTYPES +) +def test_setitem_temporal(pa_type): + # GH 53171 + unit = pa_type.unit + if pa.types.is_duration(pa_type): + val = pd.Timedelta(1, unit=unit).as_unit(unit) + else: + val = pd.Timestamp(1, unit=unit, tz=pa_type.tz).as_unit(unit) + + arr = ArrowExtensionArray(pa.array([1, 2, 3], type=pa_type)) + + result = arr.copy() + result[:] = val + expected = ArrowExtensionArray(pa.array([1, 1, 1], type=pa_type)) + tm.assert_extension_array_equal(result, expected) + + +@pytest.mark.parametrize( + "pa_type", tm.DATETIME_PYARROW_DTYPES + tm.TIMEDELTA_PYARROW_DTYPES +) +def test_arithmetic_temporal(pa_type, request): + # GH 53171 + arr = ArrowExtensionArray(pa.array([1, 2, 3], type=pa_type)) + unit = pa_type.unit + result = arr - pd.Timedelta(1, unit=unit).as_unit(unit) + expected = ArrowExtensionArray(pa.array([0, 1, 2], type=pa_type)) + tm.assert_extension_array_equal(result, expected) + + +@pytest.mark.parametrize( + "pa_type", tm.DATETIME_PYARROW_DTYPES + tm.TIMEDELTA_PYARROW_DTYPES +) +def test_comparison_temporal(pa_type): + # GH 53171 + unit = pa_type.unit + if pa.types.is_duration(pa_type): + val = pd.Timedelta(1, unit=unit).as_unit(unit) + else: + val = pd.Timestamp(1, unit=unit, tz=pa_type.tz).as_unit(unit) + + arr = ArrowExtensionArray(pa.array([1, 2, 3], type=pa_type)) + + result = arr > val + expected = ArrowExtensionArray(pa.array([False, True, True], type=pa.bool_())) + tm.assert_extension_array_equal(result, expected) + + +@pytest.mark.parametrize( + "pa_type", tm.DATETIME_PYARROW_DTYPES + tm.TIMEDELTA_PYARROW_DTYPES +) +def test_getitem_temporal(pa_type): + # GH 53326 + arr = ArrowExtensionArray(pa.array([1, 2, 3], type=pa_type)) + result = arr[1] + if pa.types.is_duration(pa_type): + expected = pd.Timedelta(2, unit=pa_type.unit).as_unit(pa_type.unit) + assert isinstance(result, pd.Timedelta) + else: + expected = pd.Timestamp(2, unit=pa_type.unit, tz=pa_type.tz).as_unit( + pa_type.unit + ) + assert isinstance(result, pd.Timestamp) + assert result.unit == expected.unit + assert result == expected + + +@pytest.mark.parametrize( + "pa_type", tm.DATETIME_PYARROW_DTYPES + tm.TIMEDELTA_PYARROW_DTYPES +) +def test_iter_temporal(pa_type): + # GH 53326 + arr = ArrowExtensionArray(pa.array([1, None], type=pa_type)) + result = list(arr) + if pa.types.is_duration(pa_type): + expected = [ + pd.Timedelta(1, unit=pa_type.unit).as_unit(pa_type.unit), + pd.NA, + ] + assert isinstance(result[0], pd.Timedelta) + else: + expected = [ + pd.Timestamp(1, unit=pa_type.unit, tz=pa_type.tz).as_unit(pa_type.unit), + pd.NA, + ] + assert isinstance(result[0], pd.Timestamp) + assert result[0].unit == expected[0].unit + assert result == expected + + +def test_groupby_series_size_returns_pa_int(data): + # GH 54132 + ser = pd.Series(data[:3], index=["a", "a", "b"]) + result = ser.groupby(level=0).size() + expected = pd.Series([2, 1], dtype="int64[pyarrow]", index=["a", "b"]) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "pa_type", tm.DATETIME_PYARROW_DTYPES + tm.TIMEDELTA_PYARROW_DTYPES, ids=repr +) +@pytest.mark.parametrize("dtype", [None, object]) +def test_to_numpy_temporal(pa_type, dtype): + # GH 53326 + # GH 55997: Return datetime64/timedelta64 types with NaT if possible + arr = ArrowExtensionArray(pa.array([1, None], type=pa_type)) + result = arr.to_numpy(dtype=dtype) + if pa.types.is_duration(pa_type): + value = pd.Timedelta(1, unit=pa_type.unit).as_unit(pa_type.unit) + else: + value = pd.Timestamp(1, unit=pa_type.unit, tz=pa_type.tz).as_unit(pa_type.unit) + + if dtype == object or (pa.types.is_timestamp(pa_type) and pa_type.tz is not None): + if dtype == object: + na = pd.NA + else: + na = pd.NaT + expected = np.array([value, na], dtype=object) + assert result[0].unit == value.unit + else: + na = pa_type.to_pandas_dtype().type("nat", pa_type.unit) + value = value.to_numpy() + expected = np.array([value, na]) + assert np.datetime_data(result[0])[0] == pa_type.unit + tm.assert_numpy_array_equal(result, expected) + + +def test_groupby_count_return_arrow_dtype(data_missing): + df = pd.DataFrame({"A": [1, 1], "B": data_missing, "C": data_missing}) + result = df.groupby("A").count() + expected = pd.DataFrame( + [[1, 1]], + index=pd.Index([1], name="A"), + columns=["B", "C"], + dtype="int64[pyarrow]", + ) + tm.assert_frame_equal(result, expected) + + +def test_fixed_size_list(): + # GH#55000 + ser = pd.Series( + [[1, 2], [3, 4]], dtype=ArrowDtype(pa.list_(pa.int64(), list_size=2)) + ) + result = ser.dtype.type + assert result == list + + +def test_arrowextensiondtype_dataframe_repr(): + # GH 54062 + df = pd.DataFrame( + pd.period_range("2012", periods=3), + columns=["col"], + dtype=ArrowDtype(ArrowPeriodType("D")), + ) + result = repr(df) + # TODO: repr value may not be expected; address how + # pyarrow.ExtensionType values are displayed + expected = " col\n0 15340\n1 15341\n2 15342" + assert result == expected + + +def test_pow_missing_operand(): + # GH 55512 + k = pd.Series([2, None], dtype="int64[pyarrow]") + result = k.pow(None, fill_value=3) + expected = pd.Series([8, None], dtype="int64[pyarrow]") + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("pa_type", tm.TIMEDELTA_PYARROW_DTYPES) +def test_duration_fillna_numpy(pa_type): + # GH 54707 + ser1 = pd.Series([None, 2], dtype=ArrowDtype(pa_type)) + ser2 = pd.Series(np.array([1, 3], dtype=f"m8[{pa_type.unit}]")) + result = ser1.fillna(ser2) + expected = pd.Series([1, 2], dtype=ArrowDtype(pa_type)) + tm.assert_series_equal(result, expected) + + +def test_comparison_not_propagating_arrow_error(): + # GH#54944 + a = pd.Series([1 << 63], dtype="uint64[pyarrow]") + b = pd.Series([None], dtype="int64[pyarrow]") + with pytest.raises(pa.lib.ArrowInvalid, match="Integer value"): + a < b + + +def test_factorize_chunked_dictionary(): + # GH 54844 + pa_array = pa.chunked_array( + [pa.array(["a"]).dictionary_encode(), pa.array(["b"]).dictionary_encode()] + ) + ser = pd.Series(ArrowExtensionArray(pa_array)) + res_indices, res_uniques = ser.factorize() + exp_indicies = np.array([0, 1], dtype=np.intp) + exp_uniques = pd.Index(ArrowExtensionArray(pa_array.combine_chunks())) + tm.assert_numpy_array_equal(res_indices, exp_indicies) + tm.assert_index_equal(res_uniques, exp_uniques) + + +def test_dictionary_astype_categorical(): + # GH#56672 + arrs = [ + pa.array(np.array(["a", "x", "c", "a"])).dictionary_encode(), + pa.array(np.array(["a", "d", "c"])).dictionary_encode(), + ] + ser = pd.Series(ArrowExtensionArray(pa.chunked_array(arrs))) + result = ser.astype("category") + categories = pd.Index(["a", "x", "c", "d"], dtype=ArrowDtype(pa.string())) + expected = pd.Series( + ["a", "x", "c", "a", "a", "d", "c"], + dtype=pd.CategoricalDtype(categories=categories), + ) + tm.assert_series_equal(result, expected) + + +def test_arrow_floordiv(): + # GH 55561 + a = pd.Series([-7], dtype="int64[pyarrow]") + b = pd.Series([4], dtype="int64[pyarrow]") + expected = pd.Series([-2], dtype="int64[pyarrow]") + result = a // b + tm.assert_series_equal(result, expected) + + +def test_arrow_floordiv_large_values(): + # GH 56645 + a = pd.Series([1425801600000000000], dtype="int64[pyarrow]") + expected = pd.Series([1425801600000], dtype="int64[pyarrow]") + result = a // 1_000_000 + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("dtype", ["int64[pyarrow]", "uint64[pyarrow]"]) +def test_arrow_floordiv_large_integral_result(dtype): + # GH 56676 + a = pd.Series([18014398509481983], dtype=dtype) + result = a // 1 + tm.assert_series_equal(result, a) + + +@pytest.mark.parametrize("pa_type", tm.SIGNED_INT_PYARROW_DTYPES) +def test_arrow_floordiv_larger_divisor(pa_type): + # GH 56676 + dtype = ArrowDtype(pa_type) + a = pd.Series([-23], dtype=dtype) + result = a // 24 + expected = pd.Series([-1], dtype=dtype) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("pa_type", tm.SIGNED_INT_PYARROW_DTYPES) +def test_arrow_floordiv_integral_invalid(pa_type): + # GH 56676 + min_value = np.iinfo(pa_type.to_pandas_dtype()).min + a = pd.Series([min_value], dtype=ArrowDtype(pa_type)) + with pytest.raises(pa.lib.ArrowInvalid, match="overflow|not in range"): + a // -1 + with pytest.raises(pa.lib.ArrowInvalid, match="divide by zero"): + a // 0 + + +@pytest.mark.parametrize("dtype", tm.FLOAT_PYARROW_DTYPES_STR_REPR) +def test_arrow_floordiv_floating_0_divisor(dtype): + # GH 56676 + a = pd.Series([2], dtype=dtype) + result = a // 0 + expected = pd.Series([float("inf")], dtype=dtype) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("dtype", ["float64", "datetime64[ns]", "timedelta64[ns]"]) +def test_astype_int_with_null_to_numpy_dtype(dtype): + # GH 57093 + ser = pd.Series([1, None], dtype="int64[pyarrow]") + result = ser.astype(dtype) + expected = pd.Series([1, None], dtype=dtype) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("pa_type", tm.ALL_INT_PYARROW_DTYPES) +def test_arrow_integral_floordiv_large_values(pa_type): + # GH 56676 + max_value = np.iinfo(pa_type.to_pandas_dtype()).max + dtype = ArrowDtype(pa_type) + a = pd.Series([max_value], dtype=dtype) + b = pd.Series([1], dtype=dtype) + result = a // b + tm.assert_series_equal(result, a) + + +@pytest.mark.parametrize("dtype", ["int64[pyarrow]", "uint64[pyarrow]"]) +def test_arrow_true_division_large_divisor(dtype): + # GH 56706 + a = pd.Series([0], dtype=dtype) + b = pd.Series([18014398509481983], dtype=dtype) + expected = pd.Series([0], dtype="float64[pyarrow]") + result = a / b + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("dtype", ["int64[pyarrow]", "uint64[pyarrow]"]) +def test_arrow_floor_division_large_divisor(dtype): + # GH 56706 + a = pd.Series([0], dtype=dtype) + b = pd.Series([18014398509481983], dtype=dtype) + expected = pd.Series([0], dtype=dtype) + result = a // b + tm.assert_series_equal(result, expected) + + +def test_string_to_datetime_parsing_cast(): + # GH 56266 + string_dates = ["2020-01-01 04:30:00", "2020-01-02 00:00:00", "2020-01-03 00:00:00"] + result = pd.Series(string_dates, dtype="timestamp[ns][pyarrow]") + expected = pd.Series( + ArrowExtensionArray(pa.array(pd.to_datetime(string_dates), from_pandas=True)) + ) + tm.assert_series_equal(result, expected) + + +@pytest.mark.skipif( + pa_version_under13p0, reason="pairwise_diff_checked not implemented in pyarrow" +) +def test_interpolate_not_numeric(data): + if not data.dtype._is_numeric: + ser = pd.Series(data) + msg = re.escape(f"Cannot interpolate with {ser.dtype} dtype") + with pytest.raises(TypeError, match=msg): + pd.Series(data).interpolate() + + +def test_string_to_time_parsing_cast(): + # GH 56463 + string_times = ["11:41:43.076160"] + result = pd.Series(string_times, dtype="time64[us][pyarrow]") + expected = pd.Series( + ArrowExtensionArray(pa.array([time(11, 41, 43, 76160)], from_pandas=True)) + ) + tm.assert_series_equal(result, expected) + + +def test_to_numpy_float(): + # GH#56267 + ser = pd.Series([32, 40, None], dtype="float[pyarrow]") + result = ser.astype("float64") + expected = pd.Series([32, 40, np.nan], dtype="float64") + tm.assert_series_equal(result, expected) + + +def test_to_numpy_timestamp_to_int(): + # GH 55997 + ser = pd.Series(["2020-01-01 04:30:00"], dtype="timestamp[ns][pyarrow]") + result = ser.to_numpy(dtype=np.int64) + expected = np.array([1577853000000000000]) + tm.assert_numpy_array_equal(result, expected) + + +def test_map_numeric_na_action(): + ser = pd.Series([32, 40, None], dtype="int64[pyarrow]") + result = ser.map(lambda x: 42, na_action="ignore") + expected = pd.Series([42.0, 42.0, np.nan], dtype="float64") + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_categorical.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_categorical.py new file mode 100644 index 0000000000000000000000000000000000000000..135ea67c924d0b04a28ad8a3eba4f39d43a0b44a --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_categorical.py @@ -0,0 +1,200 @@ +""" +This file contains a minimal set of tests for compliance with the extension +array interface test suite, and should contain no other tests. +The test suite for the full functionality of the array is located in +`pandas/tests/arrays/`. + +The tests in this file are inherited from the BaseExtensionTests, and only +minimal tweaks should be applied to get the tests passing (by overwriting a +parent method). + +Additional tests should either be added to one of the BaseExtensionTests +classes (if they are relevant for the extension interface for all dtypes), or +be added to the array-specific tests in `pandas/tests/arrays/`. + +""" +import string + +import numpy as np +import pytest + +from pandas._config import using_string_dtype + +import pandas as pd +from pandas import Categorical +import pandas._testing as tm +from pandas.api.types import CategoricalDtype +from pandas.tests.extension import base + + +def make_data(): + while True: + values = np.random.default_rng(2).choice(list(string.ascii_letters), size=100) + # ensure we meet the requirements + # 1. first two not null + # 2. first and second are different + if values[0] != values[1]: + break + return values + + +@pytest.fixture +def dtype(): + return CategoricalDtype() + + +@pytest.fixture +def data(): + """Length-100 array for this type. + + * data[0] and data[1] should both be non missing + * data[0] and data[1] should not be equal + """ + return Categorical(make_data()) + + +@pytest.fixture +def data_missing(): + """Length 2 array with [NA, Valid]""" + return Categorical([np.nan, "A"]) + + +@pytest.fixture +def data_for_sorting(): + return Categorical(["A", "B", "C"], categories=["C", "A", "B"], ordered=True) + + +@pytest.fixture +def data_missing_for_sorting(): + return Categorical(["A", None, "B"], categories=["B", "A"], ordered=True) + + +@pytest.fixture +def data_for_grouping(): + return Categorical(["a", "a", None, None, "b", "b", "a", "c"]) + + +class TestCategorical(base.ExtensionTests): + @pytest.mark.xfail(reason="Memory usage doesn't match") + def test_memory_usage(self, data): + # TODO: Is this deliberate? + super().test_memory_usage(data) + + def test_contains(self, data, data_missing): + # GH-37867 + # na value handling in Categorical.__contains__ is deprecated. + # See base.BaseInterFaceTests.test_contains for more details. + + na_value = data.dtype.na_value + # ensure data without missing values + data = data[~data.isna()] + + # first elements are non-missing + assert data[0] in data + assert data_missing[0] in data_missing + + # check the presence of na_value + assert na_value in data_missing + assert na_value not in data + + # Categoricals can contain other nan-likes than na_value + for na_value_obj in tm.NULL_OBJECTS: + if na_value_obj is na_value: + continue + assert na_value_obj not in data + # this section suffers from super method + if not using_string_dtype(): + assert na_value_obj in data_missing + + def test_empty(self, dtype): + cls = dtype.construct_array_type() + result = cls._empty((4,), dtype=dtype) + + assert isinstance(result, cls) + # the dtype we passed is not initialized, so will not match the + # dtype on our result. + assert result.dtype == CategoricalDtype([]) + + @pytest.mark.skip(reason="Backwards compatibility") + def test_getitem_scalar(self, data): + # CategoricalDtype.type isn't "correct" since it should + # be a parent of the elements (object). But don't want + # to break things by changing. + super().test_getitem_scalar(data) + + @pytest.mark.xfail(reason="Unobserved categories included") + def test_value_counts(self, all_data, dropna): + return super().test_value_counts(all_data, dropna) + + def test_combine_add(self, data_repeated): + # GH 20825 + # When adding categoricals in combine, result is a string + orig_data1, orig_data2 = data_repeated(2) + s1 = pd.Series(orig_data1) + s2 = pd.Series(orig_data2) + result = s1.combine(s2, lambda x1, x2: x1 + x2) + expected = pd.Series( + [a + b for (a, b) in zip(list(orig_data1), list(orig_data2))] + ) + tm.assert_series_equal(result, expected) + + val = s1.iloc[0] + result = s1.combine(val, lambda x1, x2: x1 + x2) + expected = pd.Series([a + val for a in list(orig_data1)]) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("na_action", [None, "ignore"]) + def test_map(self, data, na_action): + result = data.map(lambda x: x, na_action=na_action) + tm.assert_extension_array_equal(result, data) + + def test_arith_frame_with_scalar(self, data, all_arithmetic_operators, request): + # frame & scalar + op_name = all_arithmetic_operators + if op_name == "__rmod__": + request.applymarker( + pytest.mark.xfail( + reason="rmod never called when string is first argument" + ) + ) + super().test_arith_frame_with_scalar(data, op_name) + + def test_arith_series_with_scalar(self, data, all_arithmetic_operators, request): + op_name = all_arithmetic_operators + if op_name == "__rmod__": + request.applymarker( + pytest.mark.xfail( + reason="rmod never called when string is first argument" + ) + ) + super().test_arith_series_with_scalar(data, op_name) + + def _compare_other(self, ser: pd.Series, data, op, other): + op_name = f"__{op.__name__}__" + if op_name not in ["__eq__", "__ne__"]: + msg = "Unordered Categoricals can only compare equality or not" + with pytest.raises(TypeError, match=msg): + op(data, other) + else: + return super()._compare_other(ser, data, op, other) + + @pytest.mark.xfail(reason="Categorical overrides __repr__") + @pytest.mark.parametrize("size", ["big", "small"]) + def test_array_repr(self, data, size): + super().test_array_repr(data, size) + + @pytest.mark.xfail(reason="TBD") + @pytest.mark.parametrize("as_index", [True, False]) + def test_groupby_extension_agg(self, as_index, data_for_grouping): + super().test_groupby_extension_agg(as_index, data_for_grouping) + + +class Test2DCompat(base.NDArrayBacked2DTests): + def test_repr_2d(self, data): + # Categorical __repr__ doesn't include "Categorical", so we need + # to special-case + res = repr(data.reshape(1, -1)) + assert res.count("\nCategories") == 1 + + res = repr(data.reshape(-1, 1)) + assert res.count("\nCategories") == 1 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_common.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_common.py new file mode 100644 index 0000000000000000000000000000000000000000..5eda0f00f54cae1002b0e7e60e9de765870a9ad8 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_common.py @@ -0,0 +1,105 @@ +import numpy as np +import pytest + +from pandas.core.dtypes import dtypes +from pandas.core.dtypes.common import is_extension_array_dtype + +import pandas as pd +import pandas._testing as tm +from pandas.core.arrays import ExtensionArray + + +class DummyDtype(dtypes.ExtensionDtype): + pass + + +class DummyArray(ExtensionArray): + def __init__(self, data) -> None: + self.data = data + + def __array__(self, dtype=None, copy=None): + return self.data + + @property + def dtype(self): + return DummyDtype() + + def astype(self, dtype, copy=True): + # we don't support anything but a single dtype + if isinstance(dtype, DummyDtype): + if copy: + return type(self)(self.data) + return self + elif not copy: + return np.asarray(self, dtype=dtype) + else: + return np.array(self, dtype=dtype, copy=copy) + + +class TestExtensionArrayDtype: + @pytest.mark.parametrize( + "values", + [ + pd.Categorical([]), + pd.Categorical([]).dtype, + pd.Series(pd.Categorical([])), + DummyDtype(), + DummyArray(np.array([1, 2])), + ], + ) + def test_is_extension_array_dtype(self, values): + assert is_extension_array_dtype(values) + + @pytest.mark.parametrize("values", [np.array([]), pd.Series(np.array([]))]) + def test_is_not_extension_array_dtype(self, values): + assert not is_extension_array_dtype(values) + + +def test_astype(): + arr = DummyArray(np.array([1, 2, 3])) + expected = np.array([1, 2, 3], dtype=object) + + result = arr.astype(object) + tm.assert_numpy_array_equal(result, expected) + + result = arr.astype("object") + tm.assert_numpy_array_equal(result, expected) + + +def test_astype_no_copy(): + arr = DummyArray(np.array([1, 2, 3], dtype=np.int64)) + result = arr.astype(arr.dtype, copy=False) + + assert arr is result + + result = arr.astype(arr.dtype) + assert arr is not result + + +@pytest.mark.parametrize("dtype", [dtypes.CategoricalDtype(), dtypes.IntervalDtype()]) +def test_is_extension_array_dtype(dtype): + assert isinstance(dtype, dtypes.ExtensionDtype) + assert is_extension_array_dtype(dtype) + + +class CapturingStringArray(pd.arrays.StringArray): + """Extend StringArray to capture arguments to __getitem__""" + + def __getitem__(self, item): + self.last_item_arg = item + return super().__getitem__(item) + + +def test_ellipsis_index(): + # GH#42430 1D slices over extension types turn into N-dimensional slices + # over ExtensionArrays + df = pd.DataFrame( + {"col1": CapturingStringArray(np.array(["hello", "world"], dtype=object))} + ) + _ = df.iloc[:1] + + # String comparison because there's no native way to compare slices. + # Before the fix for GH#42430, last_item_arg would get set to the 2D slice + # (Ellipsis, slice(None, 1, None)) + out = df["col1"].array.last_item_arg + assert str(out) == "slice(None, 1, None)" diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_datetime.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_datetime.py new file mode 100644 index 0000000000000000000000000000000000000000..7f70957007dad9cc589e6f589c48555fd90f527d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_datetime.py @@ -0,0 +1,144 @@ +""" +This file contains a minimal set of tests for compliance with the extension +array interface test suite, and should contain no other tests. +The test suite for the full functionality of the array is located in +`pandas/tests/arrays/`. + +The tests in this file are inherited from the BaseExtensionTests, and only +minimal tweaks should be applied to get the tests passing (by overwriting a +parent method). + +Additional tests should either be added to one of the BaseExtensionTests +classes (if they are relevant for the extension interface for all dtypes), or +be added to the array-specific tests in `pandas/tests/arrays/`. + +""" +import numpy as np +import pytest + +from pandas.core.dtypes.dtypes import DatetimeTZDtype + +import pandas as pd +import pandas._testing as tm +from pandas.core.arrays import DatetimeArray +from pandas.tests.extension import base + + +@pytest.fixture(params=["US/Central"]) +def dtype(request): + return DatetimeTZDtype(unit="ns", tz=request.param) + + +@pytest.fixture +def data(dtype): + data = DatetimeArray._from_sequence( + pd.date_range("2000", periods=100, tz=dtype.tz), dtype=dtype + ) + return data + + +@pytest.fixture +def data_missing(dtype): + return DatetimeArray._from_sequence( + np.array(["NaT", "2000-01-01"], dtype="datetime64[ns]"), dtype=dtype + ) + + +@pytest.fixture +def data_for_sorting(dtype): + a = pd.Timestamp("2000-01-01") + b = pd.Timestamp("2000-01-02") + c = pd.Timestamp("2000-01-03") + return DatetimeArray._from_sequence( + np.array([b, c, a], dtype="datetime64[ns]"), dtype=dtype + ) + + +@pytest.fixture +def data_missing_for_sorting(dtype): + a = pd.Timestamp("2000-01-01") + b = pd.Timestamp("2000-01-02") + return DatetimeArray._from_sequence( + np.array([b, "NaT", a], dtype="datetime64[ns]"), dtype=dtype + ) + + +@pytest.fixture +def data_for_grouping(dtype): + """ + Expected to be like [B, B, NA, NA, A, A, B, C] + + Where A < B < C and NA is missing + """ + a = pd.Timestamp("2000-01-01") + b = pd.Timestamp("2000-01-02") + c = pd.Timestamp("2000-01-03") + na = "NaT" + return DatetimeArray._from_sequence( + np.array([b, b, na, na, a, a, b, c], dtype="datetime64[ns]"), dtype=dtype + ) + + +@pytest.fixture +def na_cmp(): + def cmp(a, b): + return a is pd.NaT and a is b + + return cmp + + +# ---------------------------------------------------------------------------- +class TestDatetimeArray(base.ExtensionTests): + def _get_expected_exception(self, op_name, obj, other): + if op_name in ["__sub__", "__rsub__"]: + return None + return super()._get_expected_exception(op_name, obj, other) + + def _supports_accumulation(self, ser, op_name: str) -> bool: + return op_name in ["cummin", "cummax"] + + def _supports_reduction(self, obj, op_name: str) -> bool: + return op_name in ["min", "max", "median", "mean", "std", "any", "all"] + + @pytest.mark.parametrize("skipna", [True, False]) + def test_reduce_series_boolean(self, data, all_boolean_reductions, skipna): + meth = all_boolean_reductions + msg = f"'{meth}' with datetime64 dtypes is deprecated and will raise in" + with tm.assert_produces_warning( + FutureWarning, match=msg, check_stacklevel=False + ): + super().test_reduce_series_boolean(data, all_boolean_reductions, skipna) + + def test_series_constructor(self, data): + # Series construction drops any .freq attr + data = data._with_freq(None) + super().test_series_constructor(data) + + @pytest.mark.parametrize("na_action", [None, "ignore"]) + def test_map(self, data, na_action): + result = data.map(lambda x: x, na_action=na_action) + tm.assert_extension_array_equal(result, data) + + def check_reduce(self, ser: pd.Series, op_name: str, skipna: bool): + if op_name in ["median", "mean", "std"]: + alt = ser.astype("int64") + + res_op = getattr(ser, op_name) + exp_op = getattr(alt, op_name) + result = res_op(skipna=skipna) + expected = exp_op(skipna=skipna) + if op_name in ["mean", "median"]: + # error: Item "dtype[Any]" of "dtype[Any] | ExtensionDtype" + # has no attribute "tz" + tz = ser.dtype.tz # type: ignore[union-attr] + expected = pd.Timestamp(expected, tz=tz) + else: + expected = pd.Timedelta(expected) + tm.assert_almost_equal(result, expected) + + else: + return super().check_reduce(ser, op_name, skipna) + + +class Test2DCompat(base.NDArrayBacked2DTests): + pass diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_extension.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_extension.py new file mode 100644 index 0000000000000000000000000000000000000000..1ed626cd5108081eff7156275f439ececdf28241 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_extension.py @@ -0,0 +1,26 @@ +""" +Tests for behavior if an author does *not* implement EA methods. +""" +import numpy as np +import pytest + +from pandas.core.arrays import ExtensionArray + + +class MyEA(ExtensionArray): + def __init__(self, values) -> None: + self._values = values + + +@pytest.fixture +def data(): + arr = np.arange(10) + return MyEA(arr) + + +class TestExtensionArray: + def test_errors(self, data, all_arithmetic_operators): + # invalid ops + op_name = all_arithmetic_operators + with pytest.raises(AttributeError): + getattr(data, op_name) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_interval.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_interval.py new file mode 100644 index 0000000000000000000000000000000000000000..6292e6051aa90e4a79420c4bc6ba8ef94d27940a --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_interval.py @@ -0,0 +1,123 @@ +""" +This file contains a minimal set of tests for compliance with the extension +array interface test suite, and should contain no other tests. +The test suite for the full functionality of the array is located in +`pandas/tests/arrays/`. + +The tests in this file are inherited from the BaseExtensionTests, and only +minimal tweaks should be applied to get the tests passing (by overwriting a +parent method). + +Additional tests should either be added to one of the BaseExtensionTests +classes (if they are relevant for the extension interface for all dtypes), or +be added to the array-specific tests in `pandas/tests/arrays/`. + +""" +from __future__ import annotations + +from typing import TYPE_CHECKING + +import numpy as np +import pytest + +from pandas.core.dtypes.dtypes import IntervalDtype + +from pandas import Interval +from pandas.core.arrays import IntervalArray +from pandas.tests.extension import base + +if TYPE_CHECKING: + import pandas as pd + + +def make_data(): + N = 100 + left_array = np.random.default_rng(2).uniform(size=N).cumsum() + right_array = left_array + np.random.default_rng(2).uniform(size=N) + return [Interval(left, right) for left, right in zip(left_array, right_array)] + + +@pytest.fixture +def dtype(): + return IntervalDtype() + + +@pytest.fixture +def data(): + """Length-100 PeriodArray for semantics test.""" + return IntervalArray(make_data()) + + +@pytest.fixture +def data_missing(): + """Length 2 array with [NA, Valid]""" + return IntervalArray.from_tuples([None, (0, 1)]) + + +@pytest.fixture +def data_for_twos(): + pytest.skip("Interval is not a numeric dtype") + + +@pytest.fixture +def data_for_sorting(): + return IntervalArray.from_tuples([(1, 2), (2, 3), (0, 1)]) + + +@pytest.fixture +def data_missing_for_sorting(): + return IntervalArray.from_tuples([(1, 2), None, (0, 1)]) + + +@pytest.fixture +def data_for_grouping(): + a = (0, 1) + b = (1, 2) + c = (2, 3) + return IntervalArray.from_tuples([b, b, None, None, a, a, b, c]) + + +class TestIntervalArray(base.ExtensionTests): + divmod_exc = TypeError + + def _supports_reduction(self, ser: pd.Series, op_name: str) -> bool: + return op_name in ["min", "max"] + + @pytest.mark.xfail( + reason="Raises with incorrect message bc it disallows *all* listlikes " + "instead of just wrong-length listlikes" + ) + def test_fillna_length_mismatch(self, data_missing): + super().test_fillna_length_mismatch(data_missing) + + @pytest.mark.filterwarnings( + "ignore:invalid value encountered in cast:RuntimeWarning" + ) + def test_hash_pandas_object(self, data): + super().test_hash_pandas_object(data) + + @pytest.mark.filterwarnings( + "ignore:invalid value encountered in cast:RuntimeWarning" + ) + def test_hash_pandas_object_works(self, data, as_frame): + super().test_hash_pandas_object_works(data, as_frame) + + @pytest.mark.filterwarnings( + "ignore:invalid value encountered in cast:RuntimeWarning" + ) + @pytest.mark.parametrize("engine", ["c", "python"]) + def test_EA_types(self, engine, data, request): + super().test_EA_types(engine, data, request) + + @pytest.mark.filterwarnings( + "ignore:invalid value encountered in cast:RuntimeWarning" + ) + def test_astype_str(self, data): + super().test_astype_str(data) + + +# TODO: either belongs in tests.arrays.interval or move into base tests. +def test_fillna_non_scalar_raises(data_missing): + msg = "can only insert Interval objects and NA into an IntervalArray" + with pytest.raises(TypeError, match=msg): + data_missing.fillna([1, 1]) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_masked.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_masked.py new file mode 100644 index 0000000000000000000000000000000000000000..651f783b44d1f788b57df4fc1ff0c8b2b33bc0f3 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_masked.py @@ -0,0 +1,417 @@ +""" +This file contains a minimal set of tests for compliance with the extension +array interface test suite, and should contain no other tests. +The test suite for the full functionality of the array is located in +`pandas/tests/arrays/`. + +The tests in this file are inherited from the BaseExtensionTests, and only +minimal tweaks should be applied to get the tests passing (by overwriting a +parent method). + +Additional tests should either be added to one of the BaseExtensionTests +classes (if they are relevant for the extension interface for all dtypes), or +be added to the array-specific tests in `pandas/tests/arrays/`. + +""" +import warnings + +import numpy as np +import pytest + +from pandas.compat import ( + IS64, + is_platform_windows, +) +from pandas.compat.numpy import np_version_gt2 + +from pandas.core.dtypes.common import ( + is_float_dtype, + is_signed_integer_dtype, + is_unsigned_integer_dtype, +) + +import pandas as pd +import pandas._testing as tm +from pandas.core.arrays.boolean import BooleanDtype +from pandas.core.arrays.floating import ( + Float32Dtype, + Float64Dtype, +) +from pandas.core.arrays.integer import ( + Int8Dtype, + Int16Dtype, + Int32Dtype, + Int64Dtype, + UInt8Dtype, + UInt16Dtype, + UInt32Dtype, + UInt64Dtype, +) +from pandas.tests.extension import base + +is_windows_or_32bit = (is_platform_windows() and not np_version_gt2) or not IS64 + +pytestmark = [ + pytest.mark.filterwarnings( + "ignore:invalid value encountered in divide:RuntimeWarning" + ), + pytest.mark.filterwarnings("ignore:Mean of empty slice:RuntimeWarning"), + # overflow only relevant for Floating dtype cases cases + pytest.mark.filterwarnings("ignore:overflow encountered in reduce:RuntimeWarning"), +] + + +def make_data(): + return list(range(1, 9)) + [pd.NA] + list(range(10, 98)) + [pd.NA] + [99, 100] + + +def make_float_data(): + return ( + list(np.arange(0.1, 0.9, 0.1)) + + [pd.NA] + + list(np.arange(1, 9.8, 0.1)) + + [pd.NA] + + [9.9, 10.0] + ) + + +def make_bool_data(): + return [True, False] * 4 + [np.nan] + [True, False] * 44 + [np.nan] + [True, False] + + +@pytest.fixture( + params=[ + Int8Dtype, + Int16Dtype, + Int32Dtype, + Int64Dtype, + UInt8Dtype, + UInt16Dtype, + UInt32Dtype, + UInt64Dtype, + Float32Dtype, + Float64Dtype, + BooleanDtype, + ] +) +def dtype(request): + return request.param() + + +@pytest.fixture +def data(dtype): + if dtype.kind == "f": + data = make_float_data() + elif dtype.kind == "b": + data = make_bool_data() + else: + data = make_data() + return pd.array(data, dtype=dtype) + + +@pytest.fixture +def data_for_twos(dtype): + if dtype.kind == "b": + return pd.array(np.ones(100), dtype=dtype) + return pd.array(np.ones(100) * 2, dtype=dtype) + + +@pytest.fixture +def data_missing(dtype): + if dtype.kind == "f": + return pd.array([pd.NA, 0.1], dtype=dtype) + elif dtype.kind == "b": + return pd.array([np.nan, True], dtype=dtype) + return pd.array([pd.NA, 1], dtype=dtype) + + +@pytest.fixture +def data_for_sorting(dtype): + if dtype.kind == "f": + return pd.array([0.1, 0.2, 0.0], dtype=dtype) + elif dtype.kind == "b": + return pd.array([True, True, False], dtype=dtype) + return pd.array([1, 2, 0], dtype=dtype) + + +@pytest.fixture +def data_missing_for_sorting(dtype): + if dtype.kind == "f": + return pd.array([0.1, pd.NA, 0.0], dtype=dtype) + elif dtype.kind == "b": + return pd.array([True, np.nan, False], dtype=dtype) + return pd.array([1, pd.NA, 0], dtype=dtype) + + +@pytest.fixture +def na_cmp(): + # we are pd.NA + return lambda x, y: x is pd.NA and y is pd.NA + + +@pytest.fixture +def data_for_grouping(dtype): + if dtype.kind == "f": + b = 0.1 + a = 0.0 + c = 0.2 + elif dtype.kind == "b": + b = True + a = False + c = b + else: + b = 1 + a = 0 + c = 2 + + na = pd.NA + return pd.array([b, b, na, na, a, a, b, c], dtype=dtype) + + +class TestMaskedArrays(base.ExtensionTests): + @pytest.mark.parametrize("na_action", [None, "ignore"]) + def test_map(self, data_missing, na_action): + result = data_missing.map(lambda x: x, na_action=na_action) + if data_missing.dtype == Float32Dtype(): + # map roundtrips through objects, which converts to float64 + expected = data_missing.to_numpy(dtype="float64", na_value=np.nan) + else: + expected = data_missing.to_numpy() + tm.assert_numpy_array_equal(result, expected) + + def test_map_na_action_ignore(self, data_missing_for_sorting): + zero = data_missing_for_sorting[2] + result = data_missing_for_sorting.map(lambda x: zero, na_action="ignore") + if data_missing_for_sorting.dtype.kind == "b": + expected = np.array([False, pd.NA, False], dtype=object) + else: + expected = np.array([zero, np.nan, zero]) + tm.assert_numpy_array_equal(result, expected) + + def _get_expected_exception(self, op_name, obj, other): + try: + dtype = tm.get_dtype(obj) + except AttributeError: + # passed arguments reversed + dtype = tm.get_dtype(other) + + if dtype.kind == "b": + if op_name.strip("_").lstrip("r") in ["pow", "truediv", "floordiv"]: + # match behavior with non-masked bool dtype + return NotImplementedError + elif op_name in ["__sub__", "__rsub__"]: + # exception message would include "numpy boolean subtract"" + return TypeError + return None + return None + + def _cast_pointwise_result(self, op_name: str, obj, other, pointwise_result): + sdtype = tm.get_dtype(obj) + expected = pointwise_result + + if op_name in ("eq", "ne", "le", "ge", "lt", "gt"): + return expected.astype("boolean") + + if sdtype.kind in "iu": + if op_name in ("__rtruediv__", "__truediv__", "__div__"): + with warnings.catch_warnings(): + warnings.filterwarnings( + "ignore", + "Downcasting object dtype arrays", + category=FutureWarning, + ) + filled = expected.fillna(np.nan) + expected = filled.astype("Float64") + else: + # combine method result in 'biggest' (int64) dtype + expected = expected.astype(sdtype) + elif sdtype.kind == "b": + if op_name in ( + "__floordiv__", + "__rfloordiv__", + "__pow__", + "__rpow__", + "__mod__", + "__rmod__", + ): + # combine keeps boolean type + expected = expected.astype("Int8") + + elif op_name in ("__truediv__", "__rtruediv__"): + # combine with bools does not generate the correct result + # (numpy behaviour for div is to regard the bools as numeric) + op = self.get_op_from_name(op_name) + expected = self._combine(obj.astype(float), other, op) + expected = expected.astype("Float64") + + if op_name == "__rpow__": + # for rpow, combine does not propagate NaN + result = getattr(obj, op_name)(other) + expected[result.isna()] = np.nan + else: + # combine method result in 'biggest' (float64) dtype + expected = expected.astype(sdtype) + return expected + + def test_divmod_series_array(self, data, data_for_twos, request): + if data.dtype.kind == "b": + mark = pytest.mark.xfail( + reason="Inconsistency between floordiv and divmod; we raise for " + "floordiv but not for divmod. This matches what we do for " + "non-masked bool dtype." + ) + request.applymarker(mark) + super().test_divmod_series_array(data, data_for_twos) + + def test_combine_le(self, data_repeated): + # TODO: patching self is a bad pattern here + orig_data1, orig_data2 = data_repeated(2) + if orig_data1.dtype.kind == "b": + self._combine_le_expected_dtype = "boolean" + else: + # TODO: can we make this boolean? + self._combine_le_expected_dtype = object + super().test_combine_le(data_repeated) + + def _supports_reduction(self, ser: pd.Series, op_name: str) -> bool: + if op_name in ["any", "all"] and ser.dtype.kind != "b": + pytest.skip(reason="Tested in tests/reductions/test_reductions.py") + return True + + def check_reduce(self, ser: pd.Series, op_name: str, skipna: bool): + # overwrite to ensure pd.NA is tested instead of np.nan + # https://github.com/pandas-dev/pandas/issues/30958 + + cmp_dtype = "int64" + if ser.dtype.kind == "f": + # Item "dtype[Any]" of "Union[dtype[Any], ExtensionDtype]" has + # no attribute "numpy_dtype" + cmp_dtype = ser.dtype.numpy_dtype # type: ignore[union-attr] + elif ser.dtype.kind == "b": + if op_name in ["min", "max"]: + cmp_dtype = "bool" + + # TODO: prod with integer dtypes does *not* match the result we would + # get if we used object for cmp_dtype. In that cae the object result + # is a large integer while the non-object case overflows and returns 0 + alt = ser.dropna().astype(cmp_dtype) + if op_name == "count": + result = getattr(ser, op_name)() + expected = getattr(alt, op_name)() + else: + result = getattr(ser, op_name)(skipna=skipna) + expected = getattr(alt, op_name)(skipna=skipna) + if not skipna and ser.isna().any() and op_name not in ["any", "all"]: + expected = pd.NA + tm.assert_almost_equal(result, expected) + + def _get_expected_reduction_dtype(self, arr, op_name: str, skipna: bool): + if is_float_dtype(arr.dtype): + cmp_dtype = arr.dtype.name + elif op_name in ["mean", "median", "var", "std", "skew"]: + cmp_dtype = "Float64" + elif op_name in ["max", "min"]: + cmp_dtype = arr.dtype.name + elif arr.dtype in ["Int64", "UInt64"]: + cmp_dtype = arr.dtype.name + elif is_signed_integer_dtype(arr.dtype): + # TODO: Why does Window Numpy 2.0 dtype depend on skipna? + cmp_dtype = ( + "Int32" + if (is_platform_windows() and (not np_version_gt2 or not skipna)) + or not IS64 + else "Int64" + ) + elif is_unsigned_integer_dtype(arr.dtype): + cmp_dtype = ( + "UInt32" + if (is_platform_windows() and (not np_version_gt2 or not skipna)) + or not IS64 + else "UInt64" + ) + elif arr.dtype.kind == "b": + if op_name in ["mean", "median", "var", "std", "skew"]: + cmp_dtype = "Float64" + elif op_name in ["min", "max"]: + cmp_dtype = "boolean" + elif op_name in ["sum", "prod"]: + cmp_dtype = ( + "Int32" + if (is_platform_windows() and (not np_version_gt2 or not skipna)) + or not IS64 + else "Int64" + ) + else: + raise TypeError("not supposed to reach this") + else: + raise TypeError("not supposed to reach this") + return cmp_dtype + + def _supports_accumulation(self, ser: pd.Series, op_name: str) -> bool: + return True + + def check_accumulate(self, ser: pd.Series, op_name: str, skipna: bool): + # overwrite to ensure pd.NA is tested instead of np.nan + # https://github.com/pandas-dev/pandas/issues/30958 + length = 64 + if is_windows_or_32bit: + # Item "ExtensionDtype" of "Union[dtype[Any], ExtensionDtype]" has + # no attribute "itemsize" + if not ser.dtype.itemsize == 8: # type: ignore[union-attr] + length = 32 + + if ser.dtype.name.startswith("U"): + expected_dtype = f"UInt{length}" + elif ser.dtype.name.startswith("I"): + expected_dtype = f"Int{length}" + elif ser.dtype.name.startswith("F"): + # Incompatible types in assignment (expression has type + # "Union[dtype[Any], ExtensionDtype]", variable has type "str") + expected_dtype = ser.dtype # type: ignore[assignment] + elif ser.dtype.kind == "b": + if op_name in ("cummin", "cummax"): + expected_dtype = "boolean" + else: + expected_dtype = f"Int{length}" + + if expected_dtype == "Float32" and op_name == "cumprod" and skipna: + # TODO: xfail? + pytest.skip( + f"Float32 precision lead to large differences with op {op_name} " + f"and skipna={skipna}" + ) + + if op_name == "cumsum": + result = getattr(ser, op_name)(skipna=skipna) + expected = pd.Series( + pd.array( + getattr(ser.astype("float64"), op_name)(skipna=skipna), + dtype=expected_dtype, + ) + ) + tm.assert_series_equal(result, expected) + elif op_name in ["cummax", "cummin"]: + result = getattr(ser, op_name)(skipna=skipna) + expected = pd.Series( + pd.array( + getattr(ser.astype("float64"), op_name)(skipna=skipna), + dtype=ser.dtype, + ) + ) + tm.assert_series_equal(result, expected) + elif op_name == "cumprod": + result = getattr(ser[:12], op_name)(skipna=skipna) + expected = pd.Series( + pd.array( + getattr(ser[:12].astype("float64"), op_name)(skipna=skipna), + dtype=expected_dtype, + ) + ) + tm.assert_series_equal(result, expected) + + else: + raise NotImplementedError(f"{op_name} not supported") + + +class Test2DCompat(base.Dim2CompatTests): + pass diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_numpy.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_numpy.py new file mode 100644 index 0000000000000000000000000000000000000000..e38144f4c615b22c864a5b385e3b73fd74374f83 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_numpy.py @@ -0,0 +1,426 @@ +""" +This file contains a minimal set of tests for compliance with the extension +array interface test suite, and should contain no other tests. +The test suite for the full functionality of the array is located in +`pandas/tests/arrays/`. + +The tests in this file are inherited from the BaseExtensionTests, and only +minimal tweaks should be applied to get the tests passing (by overwriting a +parent method). + +Additional tests should either be added to one of the BaseExtensionTests +classes (if they are relevant for the extension interface for all dtypes), or +be added to the array-specific tests in `pandas/tests/arrays/`. + +Note: we do not bother with base.BaseIndexTests because NumpyExtensionArray +will never be held in an Index. +""" +import numpy as np +import pytest + +from pandas.core.dtypes.dtypes import NumpyEADtype + +import pandas as pd +import pandas._testing as tm +from pandas.api.types import is_object_dtype +from pandas.core.arrays.numpy_ import NumpyExtensionArray +from pandas.tests.extension import base + +orig_assert_attr_equal = tm.assert_attr_equal + + +def _assert_attr_equal(attr: str, left, right, obj: str = "Attributes"): + """ + patch tm.assert_attr_equal so NumpyEADtype("object") is closed enough to + np.dtype("object") + """ + if attr == "dtype": + lattr = getattr(left, "dtype", None) + rattr = getattr(right, "dtype", None) + if isinstance(lattr, NumpyEADtype) and not isinstance(rattr, NumpyEADtype): + left = left.astype(lattr.numpy_dtype) + elif isinstance(rattr, NumpyEADtype) and not isinstance(lattr, NumpyEADtype): + right = right.astype(rattr.numpy_dtype) + + orig_assert_attr_equal(attr, left, right, obj) + + +@pytest.fixture(params=["float", "object"]) +def dtype(request): + return NumpyEADtype(np.dtype(request.param)) + + +@pytest.fixture +def allow_in_pandas(monkeypatch): + """ + A monkeypatch to tells pandas to let us in. + + By default, passing a NumpyExtensionArray to an index / series / frame + constructor will unbox that NumpyExtensionArray to an ndarray, and treat + it as a non-EA column. We don't want people using EAs without + reason. + + The mechanism for this is a check against ABCNumpyExtensionArray + in each constructor. + + But, for testing, we need to allow them in pandas. So we patch + the _typ of NumpyExtensionArray, so that we evade the ABCNumpyExtensionArray + check. + """ + with monkeypatch.context() as m: + m.setattr(NumpyExtensionArray, "_typ", "extension") + m.setattr(tm.asserters, "assert_attr_equal", _assert_attr_equal) + yield + + +@pytest.fixture +def data(allow_in_pandas, dtype): + if dtype.numpy_dtype == "object": + return pd.Series([(i,) for i in range(100)]).array + return NumpyExtensionArray(np.arange(1, 101, dtype=dtype._dtype)) + + +@pytest.fixture +def data_missing(allow_in_pandas, dtype): + if dtype.numpy_dtype == "object": + return NumpyExtensionArray(np.array([np.nan, (1,)], dtype=object)) + return NumpyExtensionArray(np.array([np.nan, 1.0])) + + +@pytest.fixture +def na_cmp(): + def cmp(a, b): + return np.isnan(a) and np.isnan(b) + + return cmp + + +@pytest.fixture +def data_for_sorting(allow_in_pandas, dtype): + """Length-3 array with a known sort order. + + This should be three items [B, C, A] with + A < B < C + """ + if dtype.numpy_dtype == "object": + # Use an empty tuple for first element, then remove, + # to disable np.array's shape inference. + return NumpyExtensionArray(np.array([(), (2,), (3,), (1,)], dtype=object)[1:]) + return NumpyExtensionArray(np.array([1, 2, 0])) + + +@pytest.fixture +def data_missing_for_sorting(allow_in_pandas, dtype): + """Length-3 array with a known sort order. + + This should be three items [B, NA, A] with + A < B and NA missing. + """ + if dtype.numpy_dtype == "object": + return NumpyExtensionArray(np.array([(1,), np.nan, (0,)], dtype=object)) + return NumpyExtensionArray(np.array([1, np.nan, 0])) + + +@pytest.fixture +def data_for_grouping(allow_in_pandas, dtype): + """Data for factorization, grouping, and unique tests. + + Expected to be like [B, B, NA, NA, A, A, B, C] + + Where A < B < C and NA is missing + """ + if dtype.numpy_dtype == "object": + a, b, c = (1,), (2,), (3,) + else: + a, b, c = np.arange(3) + return NumpyExtensionArray( + np.array([b, b, np.nan, np.nan, a, a, b, c], dtype=dtype.numpy_dtype) + ) + + +@pytest.fixture +def data_for_twos(dtype): + if dtype.kind == "O": + pytest.skip(f"{dtype} is not a numeric dtype") + arr = np.ones(100) * 2 + return NumpyExtensionArray._from_sequence(arr, dtype=dtype) + + +@pytest.fixture +def skip_numpy_object(dtype, request): + """ + Tests for NumpyExtensionArray with nested data. Users typically won't create + these objects via `pd.array`, but they can show up through `.array` + on a Series with nested data. Many of the base tests fail, as they aren't + appropriate for nested data. + + This fixture allows these tests to be skipped when used as a usefixtures + marker to either an individual test or a test class. + """ + if dtype == "object": + mark = pytest.mark.xfail(reason="Fails for object dtype") + request.applymarker(mark) + + +skip_nested = pytest.mark.usefixtures("skip_numpy_object") + + +class TestNumpyExtensionArray(base.ExtensionTests): + @pytest.mark.skip(reason="We don't register our dtype") + # We don't want to register. This test should probably be split in two. + def test_from_dtype(self, data): + pass + + @skip_nested + def test_series_constructor_scalar_with_index(self, data, dtype): + # ValueError: Length of passed values is 1, index implies 3. + super().test_series_constructor_scalar_with_index(data, dtype) + + def test_check_dtype(self, data, request, using_infer_string): + if data.dtype.numpy_dtype == "object": + request.applymarker( + pytest.mark.xfail( + reason=f"NumpyExtensionArray expectedly clashes with a " + f"NumPy name: {data.dtype.numpy_dtype}" + ) + ) + super().test_check_dtype(data) + + def test_is_not_object_type(self, dtype, request): + if dtype.numpy_dtype == "object": + # Different from BaseDtypeTests.test_is_not_object_type + # because NumpyEADtype(object) is an object type + assert is_object_dtype(dtype) + else: + super().test_is_not_object_type(dtype) + + @skip_nested + def test_getitem_scalar(self, data): + # AssertionError + super().test_getitem_scalar(data) + + @skip_nested + def test_shift_fill_value(self, data): + # np.array shape inference. Shift implementation fails. + super().test_shift_fill_value(data) + + @skip_nested + def test_fillna_copy_frame(self, data_missing): + # The "scalar" for this array isn't a scalar. + super().test_fillna_copy_frame(data_missing) + + @skip_nested + def test_fillna_copy_series(self, data_missing): + # The "scalar" for this array isn't a scalar. + super().test_fillna_copy_series(data_missing) + + @skip_nested + def test_searchsorted(self, data_for_sorting, as_series): + # TODO: NumpyExtensionArray.searchsorted calls ndarray.searchsorted which + # isn't quite what we want in nested data cases. Instead we need to + # adapt something like libindex._bin_search. + super().test_searchsorted(data_for_sorting, as_series) + + @pytest.mark.xfail(reason="NumpyExtensionArray.diff may fail on dtype") + def test_diff(self, data, periods): + return super().test_diff(data, periods) + + def test_insert(self, data, request): + if data.dtype.numpy_dtype == object: + mark = pytest.mark.xfail(reason="Dimension mismatch in np.concatenate") + request.applymarker(mark) + + super().test_insert(data) + + @skip_nested + def test_insert_invalid(self, data, invalid_scalar): + # NumpyExtensionArray[object] can hold anything, so skip + super().test_insert_invalid(data, invalid_scalar) + + divmod_exc = None + series_scalar_exc = None + frame_scalar_exc = None + series_array_exc = None + + def test_divmod(self, data): + divmod_exc = None + if data.dtype.kind == "O": + divmod_exc = TypeError + self.divmod_exc = divmod_exc + super().test_divmod(data) + + def test_divmod_series_array(self, data): + ser = pd.Series(data) + exc = None + if data.dtype.kind == "O": + exc = TypeError + self.divmod_exc = exc + self._check_divmod_op(ser, divmod, data) + + def test_arith_series_with_scalar(self, data, all_arithmetic_operators, request): + opname = all_arithmetic_operators + series_scalar_exc = None + if data.dtype.numpy_dtype == object: + if opname in ["__mul__", "__rmul__"]: + mark = pytest.mark.xfail( + reason="the Series.combine step raises but not the Series method." + ) + request.node.add_marker(mark) + series_scalar_exc = TypeError + self.series_scalar_exc = series_scalar_exc + super().test_arith_series_with_scalar(data, all_arithmetic_operators) + + def test_arith_series_with_array(self, data, all_arithmetic_operators): + opname = all_arithmetic_operators + series_array_exc = None + if data.dtype.numpy_dtype == object and opname not in ["__add__", "__radd__"]: + series_array_exc = TypeError + self.series_array_exc = series_array_exc + super().test_arith_series_with_array(data, all_arithmetic_operators) + + def test_arith_frame_with_scalar(self, data, all_arithmetic_operators, request): + opname = all_arithmetic_operators + frame_scalar_exc = None + if data.dtype.numpy_dtype == object: + if opname in ["__mul__", "__rmul__"]: + mark = pytest.mark.xfail( + reason="the Series.combine step raises but not the Series method." + ) + request.node.add_marker(mark) + frame_scalar_exc = TypeError + self.frame_scalar_exc = frame_scalar_exc + super().test_arith_frame_with_scalar(data, all_arithmetic_operators) + + def _supports_reduction(self, ser: pd.Series, op_name: str) -> bool: + if ser.dtype.kind == "O": + return op_name in ["sum", "min", "max", "any", "all"] + return True + + def check_reduce(self, ser: pd.Series, op_name: str, skipna: bool): + res_op = getattr(ser, op_name) + # avoid coercing int -> float. Just cast to the actual numpy type. + # error: Item "ExtensionDtype" of "dtype[Any] | ExtensionDtype" has + # no attribute "numpy_dtype" + cmp_dtype = ser.dtype.numpy_dtype # type: ignore[union-attr] + alt = ser.astype(cmp_dtype) + exp_op = getattr(alt, op_name) + if op_name == "count": + result = res_op() + expected = exp_op() + else: + result = res_op(skipna=skipna) + expected = exp_op(skipna=skipna) + tm.assert_almost_equal(result, expected) + + @pytest.mark.skip("TODO: tests not written yet") + @pytest.mark.parametrize("skipna", [True, False]) + def test_reduce_frame(self, data, all_numeric_reductions, skipna): + pass + + @skip_nested + def test_fillna_series(self, data_missing): + # Non-scalar "scalar" values. + super().test_fillna_series(data_missing) + + @skip_nested + def test_fillna_frame(self, data_missing): + # Non-scalar "scalar" values. + super().test_fillna_frame(data_missing) + + @skip_nested + def test_setitem_invalid(self, data, invalid_scalar): + # object dtype can hold anything, so doesn't raise + super().test_setitem_invalid(data, invalid_scalar) + + @skip_nested + def test_setitem_sequence_broadcasts(self, data, box_in_series): + # ValueError: cannot set using a list-like indexer with a different + # length than the value + super().test_setitem_sequence_broadcasts(data, box_in_series) + + @skip_nested + @pytest.mark.parametrize("setter", ["loc", None]) + def test_setitem_mask_broadcast(self, data, setter): + # ValueError: cannot set using a list-like indexer with a different + # length than the value + super().test_setitem_mask_broadcast(data, setter) + + @skip_nested + def test_setitem_scalar_key_sequence_raise(self, data): + # Failed: DID NOT RAISE + super().test_setitem_scalar_key_sequence_raise(data) + + # TODO: there is some issue with NumpyExtensionArray, therefore, + # skip the setitem test for now, and fix it later (GH 31446) + + @skip_nested + @pytest.mark.parametrize( + "mask", + [ + np.array([True, True, True, False, False]), + pd.array([True, True, True, False, False], dtype="boolean"), + ], + ids=["numpy-array", "boolean-array"], + ) + def test_setitem_mask(self, data, mask, box_in_series): + super().test_setitem_mask(data, mask, box_in_series) + + @skip_nested + @pytest.mark.parametrize( + "idx", + [[0, 1, 2], pd.array([0, 1, 2], dtype="Int64"), np.array([0, 1, 2])], + ids=["list", "integer-array", "numpy-array"], + ) + def test_setitem_integer_array(self, data, idx, box_in_series): + super().test_setitem_integer_array(data, idx, box_in_series) + + @pytest.mark.parametrize( + "idx, box_in_series", + [ + ([0, 1, 2, pd.NA], False), + pytest.param([0, 1, 2, pd.NA], True, marks=pytest.mark.xfail), + (pd.array([0, 1, 2, pd.NA], dtype="Int64"), False), + (pd.array([0, 1, 2, pd.NA], dtype="Int64"), False), + ], + ids=["list-False", "list-True", "integer-array-False", "integer-array-True"], + ) + def test_setitem_integer_with_missing_raises(self, data, idx, box_in_series): + super().test_setitem_integer_with_missing_raises(data, idx, box_in_series) + + @skip_nested + def test_setitem_slice(self, data, box_in_series): + super().test_setitem_slice(data, box_in_series) + + @skip_nested + def test_setitem_loc_iloc_slice(self, data): + super().test_setitem_loc_iloc_slice(data) + + def test_setitem_with_expansion_dataframe_column(self, data, full_indexer): + # https://github.com/pandas-dev/pandas/issues/32395 + df = expected = pd.DataFrame({"data": pd.Series(data)}) + result = pd.DataFrame(index=df.index) + + # because result has object dtype, the attempt to do setting inplace + # is successful, and object dtype is retained + key = full_indexer(df) + result.loc[key, "data"] = df["data"] + + # base class method has expected = df; NumpyExtensionArray behaves oddly because + # we patch _typ for these tests. + if data.dtype.numpy_dtype != object: + if not isinstance(key, slice) or key != slice(None): + expected = pd.DataFrame({"data": data.to_numpy()}) + tm.assert_frame_equal(result, expected, check_column_type=False) + + @pytest.mark.xfail(reason="NumpyEADtype is unpacked") + def test_index_from_listlike_with_dtype(self, data): + super().test_index_from_listlike_with_dtype(data) + + @skip_nested + @pytest.mark.parametrize("engine", ["c", "python"]) + def test_EA_types(self, engine, data, request): + super().test_EA_types(engine, data, request) + + +class Test2DCompat(base.NDArrayBacked2DTests): + pass diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_period.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_period.py new file mode 100644 index 0000000000000000000000000000000000000000..2d1d213322bac02e65f710ac77943876425102a5 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_period.py @@ -0,0 +1,119 @@ +""" +This file contains a minimal set of tests for compliance with the extension +array interface test suite, and should contain no other tests. +The test suite for the full functionality of the array is located in +`pandas/tests/arrays/`. + +The tests in this file are inherited from the BaseExtensionTests, and only +minimal tweaks should be applied to get the tests passing (by overwriting a +parent method). + +Additional tests should either be added to one of the BaseExtensionTests +classes (if they are relevant for the extension interface for all dtypes), or +be added to the array-specific tests in `pandas/tests/arrays/`. + +""" +from __future__ import annotations + +from typing import TYPE_CHECKING + +import numpy as np +import pytest + +from pandas._libs import ( + Period, + iNaT, +) +from pandas.compat import is_platform_windows +from pandas.compat.numpy import np_version_gte1p24 + +from pandas.core.dtypes.dtypes import PeriodDtype + +import pandas._testing as tm +from pandas.core.arrays import PeriodArray +from pandas.tests.extension import base + +if TYPE_CHECKING: + import pandas as pd + + +@pytest.fixture(params=["D", "2D"]) +def dtype(request): + return PeriodDtype(freq=request.param) + + +@pytest.fixture +def data(dtype): + return PeriodArray(np.arange(1970, 2070), dtype=dtype) + + +@pytest.fixture +def data_for_sorting(dtype): + return PeriodArray([2018, 2019, 2017], dtype=dtype) + + +@pytest.fixture +def data_missing(dtype): + return PeriodArray([iNaT, 2017], dtype=dtype) + + +@pytest.fixture +def data_missing_for_sorting(dtype): + return PeriodArray([2018, iNaT, 2017], dtype=dtype) + + +@pytest.fixture +def data_for_grouping(dtype): + B = 2018 + NA = iNaT + A = 2017 + C = 2019 + return PeriodArray([B, B, NA, NA, A, A, B, C], dtype=dtype) + + +class TestPeriodArray(base.ExtensionTests): + def _get_expected_exception(self, op_name, obj, other): + if op_name in ("__sub__", "__rsub__"): + return None + return super()._get_expected_exception(op_name, obj, other) + + def _supports_accumulation(self, ser, op_name: str) -> bool: + return op_name in ["cummin", "cummax"] + + def _supports_reduction(self, obj, op_name: str) -> bool: + return op_name in ["min", "max", "median"] + + def check_reduce(self, ser: pd.Series, op_name: str, skipna: bool): + if op_name == "median": + res_op = getattr(ser, op_name) + + alt = ser.astype("int64") + + exp_op = getattr(alt, op_name) + result = res_op(skipna=skipna) + expected = exp_op(skipna=skipna) + # error: Item "dtype[Any]" of "dtype[Any] | ExtensionDtype" has no + # attribute "freq" + freq = ser.dtype.freq # type: ignore[union-attr] + expected = Period._from_ordinal(int(expected), freq=freq) + tm.assert_almost_equal(result, expected) + + else: + return super().check_reduce(ser, op_name, skipna) + + @pytest.mark.parametrize("periods", [1, -2]) + def test_diff(self, data, periods): + if is_platform_windows() and np_version_gte1p24: + with tm.assert_produces_warning(RuntimeWarning, check_stacklevel=False): + super().test_diff(data, periods) + else: + super().test_diff(data, periods) + + @pytest.mark.parametrize("na_action", [None, "ignore"]) + def test_map(self, data, na_action): + result = data.map(lambda x: x, na_action=na_action) + tm.assert_extension_array_equal(result, data) + + +class Test2DCompat(base.NDArrayBacked2DTests): + pass diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_sparse.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_sparse.py new file mode 100644 index 0000000000000000000000000000000000000000..2d5989a5b4f1de3c8928504034ee938939b57878 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_sparse.py @@ -0,0 +1,503 @@ +""" +This file contains a minimal set of tests for compliance with the extension +array interface test suite, and should contain no other tests. +The test suite for the full functionality of the array is located in +`pandas/tests/arrays/`. + +The tests in this file are inherited from the BaseExtensionTests, and only +minimal tweaks should be applied to get the tests passing (by overwriting a +parent method). + +Additional tests should either be added to one of the BaseExtensionTests +classes (if they are relevant for the extension interface for all dtypes), or +be added to the array-specific tests in `pandas/tests/arrays/`. + +""" + +import numpy as np +import pytest + +from pandas.errors import PerformanceWarning + +import pandas as pd +from pandas import SparseDtype +import pandas._testing as tm +from pandas.arrays import SparseArray +from pandas.tests.extension import base + + +def make_data(fill_value): + rng = np.random.default_rng(2) + if np.isnan(fill_value): + data = rng.uniform(size=100) + else: + data = rng.integers(1, 100, size=100, dtype=int) + if data[0] == data[1]: + data[0] += 1 + + data[2::3] = fill_value + return data + + +@pytest.fixture +def dtype(): + return SparseDtype() + + +@pytest.fixture(params=[0, np.nan]) +def data(request): + """Length-100 PeriodArray for semantics test.""" + res = SparseArray(make_data(request.param), fill_value=request.param) + return res + + +@pytest.fixture +def data_for_twos(): + return SparseArray(np.ones(100) * 2) + + +@pytest.fixture(params=[0, np.nan]) +def data_missing(request): + """Length 2 array with [NA, Valid]""" + return SparseArray([np.nan, 1], fill_value=request.param) + + +@pytest.fixture(params=[0, np.nan]) +def data_repeated(request): + """Return different versions of data for count times""" + + def gen(count): + for _ in range(count): + yield SparseArray(make_data(request.param), fill_value=request.param) + + yield gen + + +@pytest.fixture(params=[0, np.nan]) +def data_for_sorting(request): + return SparseArray([2, 3, 1], fill_value=request.param) + + +@pytest.fixture(params=[0, np.nan]) +def data_missing_for_sorting(request): + return SparseArray([2, np.nan, 1], fill_value=request.param) + + +@pytest.fixture +def na_cmp(): + return lambda left, right: pd.isna(left) and pd.isna(right) + + +@pytest.fixture(params=[0, np.nan]) +def data_for_grouping(request): + return SparseArray([1, 1, np.nan, np.nan, 2, 2, 1, 3], fill_value=request.param) + + +@pytest.fixture(params=[0, np.nan]) +def data_for_compare(request): + return SparseArray([0, 0, np.nan, -2, -1, 4, 2, 3, 0, 0], fill_value=request.param) + + +class TestSparseArray(base.ExtensionTests): + def _supports_reduction(self, obj, op_name: str) -> bool: + return True + + @pytest.mark.parametrize("skipna", [True, False]) + def test_reduce_series_numeric(self, data, all_numeric_reductions, skipna, request): + if all_numeric_reductions in [ + "prod", + "median", + "var", + "std", + "sem", + "skew", + "kurt", + ]: + mark = pytest.mark.xfail( + reason="This should be viable but is not implemented" + ) + request.node.add_marker(mark) + elif ( + all_numeric_reductions in ["sum", "max", "min", "mean"] + and data.dtype.kind == "f" + and not skipna + ): + mark = pytest.mark.xfail(reason="getting a non-nan float") + request.node.add_marker(mark) + + super().test_reduce_series_numeric(data, all_numeric_reductions, skipna) + + @pytest.mark.parametrize("skipna", [True, False]) + def test_reduce_frame(self, data, all_numeric_reductions, skipna, request): + if all_numeric_reductions in [ + "prod", + "median", + "var", + "std", + "sem", + "skew", + "kurt", + ]: + mark = pytest.mark.xfail( + reason="This should be viable but is not implemented" + ) + request.node.add_marker(mark) + elif ( + all_numeric_reductions in ["sum", "max", "min", "mean"] + and data.dtype.kind == "f" + and not skipna + ): + mark = pytest.mark.xfail(reason="ExtensionArray NA mask are different") + request.node.add_marker(mark) + + super().test_reduce_frame(data, all_numeric_reductions, skipna) + + def _check_unsupported(self, data): + if data.dtype == SparseDtype(int, 0): + pytest.skip("Can't store nan in int array.") + + def test_concat_mixed_dtypes(self, data): + # https://github.com/pandas-dev/pandas/issues/20762 + # This should be the same, aside from concat([sparse, float]) + df1 = pd.DataFrame({"A": data[:3]}) + df2 = pd.DataFrame({"A": [1, 2, 3]}) + df3 = pd.DataFrame({"A": ["a", "b", "c"]}).astype("category") + dfs = [df1, df2, df3] + + # dataframes + result = pd.concat(dfs) + expected = pd.concat( + [x.apply(lambda s: np.asarray(s).astype(object)) for x in dfs] + ) + tm.assert_frame_equal(result, expected) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + @pytest.mark.parametrize( + "columns", + [ + ["A", "B"], + pd.MultiIndex.from_tuples( + [("A", "a"), ("A", "b")], names=["outer", "inner"] + ), + ], + ) + @pytest.mark.parametrize("future_stack", [True, False]) + def test_stack(self, data, columns, future_stack): + super().test_stack(data, columns, future_stack) + + def test_concat_columns(self, data, na_value): + self._check_unsupported(data) + super().test_concat_columns(data, na_value) + + def test_concat_extension_arrays_copy_false(self, data, na_value): + self._check_unsupported(data) + super().test_concat_extension_arrays_copy_false(data, na_value) + + def test_align(self, data, na_value): + self._check_unsupported(data) + super().test_align(data, na_value) + + def test_align_frame(self, data, na_value): + self._check_unsupported(data) + super().test_align_frame(data, na_value) + + def test_align_series_frame(self, data, na_value): + self._check_unsupported(data) + super().test_align_series_frame(data, na_value) + + def test_merge(self, data, na_value): + self._check_unsupported(data) + super().test_merge(data, na_value) + + def test_get(self, data): + ser = pd.Series(data, index=[2 * i for i in range(len(data))]) + if np.isnan(ser.values.fill_value): + assert np.isnan(ser.get(4)) and np.isnan(ser.iloc[2]) + else: + assert ser.get(4) == ser.iloc[2] + assert ser.get(2) == ser.iloc[1] + + def test_reindex(self, data, na_value): + self._check_unsupported(data) + super().test_reindex(data, na_value) + + def test_isna(self, data_missing): + sarr = SparseArray(data_missing) + expected_dtype = SparseDtype(bool, pd.isna(data_missing.dtype.fill_value)) + expected = SparseArray([True, False], dtype=expected_dtype) + result = sarr.isna() + tm.assert_sp_array_equal(result, expected) + + # test isna for arr without na + sarr = sarr.fillna(0) + expected_dtype = SparseDtype(bool, pd.isna(data_missing.dtype.fill_value)) + expected = SparseArray([False, False], fill_value=False, dtype=expected_dtype) + tm.assert_equal(sarr.isna(), expected) + + def test_fillna_limit_backfill(self, data_missing): + warns = (PerformanceWarning, FutureWarning) + with tm.assert_produces_warning(warns, check_stacklevel=False): + super().test_fillna_limit_backfill(data_missing) + + def test_fillna_no_op_returns_copy(self, data, request): + if np.isnan(data.fill_value): + request.applymarker( + pytest.mark.xfail(reason="returns array with different fill value") + ) + super().test_fillna_no_op_returns_copy(data) + + @pytest.mark.xfail(reason="Unsupported") + def test_fillna_series(self, data_missing): + # this one looks doable. + # TODO: this fails bc we do not pass through data_missing. If we did, + # the 0-fill case would xpass + super().test_fillna_series() + + def test_fillna_frame(self, data_missing): + # Have to override to specify that fill_value will change. + fill_value = data_missing[1] + + result = pd.DataFrame({"A": data_missing, "B": [1, 2]}).fillna(fill_value) + + if pd.isna(data_missing.fill_value): + dtype = SparseDtype(data_missing.dtype, fill_value) + else: + dtype = data_missing.dtype + + expected = pd.DataFrame( + { + "A": data_missing._from_sequence([fill_value, fill_value], dtype=dtype), + "B": [1, 2], + } + ) + + tm.assert_frame_equal(result, expected) + + _combine_le_expected_dtype = "Sparse[bool]" + + def test_fillna_copy_frame(self, data_missing, using_copy_on_write): + arr = data_missing.take([1, 1]) + df = pd.DataFrame({"A": arr}, copy=False) + + filled_val = df.iloc[0, 0] + result = df.fillna(filled_val) + + if hasattr(df._mgr, "blocks"): + if using_copy_on_write: + assert df.values.base is result.values.base + else: + assert df.values.base is not result.values.base + assert df.A._values.to_dense() is arr.to_dense() + + def test_fillna_copy_series(self, data_missing, using_copy_on_write): + arr = data_missing.take([1, 1]) + ser = pd.Series(arr, copy=False) + + filled_val = ser[0] + result = ser.fillna(filled_val) + + if using_copy_on_write: + assert ser._values is result._values + + else: + assert ser._values is not result._values + assert ser._values.to_dense() is arr.to_dense() + + @pytest.mark.xfail(reason="Not Applicable") + def test_fillna_length_mismatch(self, data_missing): + super().test_fillna_length_mismatch(data_missing) + + def test_where_series(self, data, na_value): + assert data[0] != data[1] + cls = type(data) + a, b = data[:2] + + ser = pd.Series(cls._from_sequence([a, a, b, b], dtype=data.dtype)) + + cond = np.array([True, True, False, False]) + result = ser.where(cond) + + new_dtype = SparseDtype("float", 0.0) + expected = pd.Series( + cls._from_sequence([a, a, na_value, na_value], dtype=new_dtype) + ) + tm.assert_series_equal(result, expected) + + other = cls._from_sequence([a, b, a, b], dtype=data.dtype) + cond = np.array([True, False, True, True]) + result = ser.where(cond, other) + expected = pd.Series(cls._from_sequence([a, b, b, b], dtype=data.dtype)) + tm.assert_series_equal(result, expected) + + def test_searchsorted(self, data_for_sorting, as_series): + with tm.assert_produces_warning(PerformanceWarning, check_stacklevel=False): + super().test_searchsorted(data_for_sorting, as_series) + + def test_shift_0_periods(self, data): + # GH#33856 shifting with periods=0 should return a copy, not same obj + result = data.shift(0) + + data._sparse_values[0] = data._sparse_values[1] + assert result._sparse_values[0] != result._sparse_values[1] + + @pytest.mark.parametrize("method", ["argmax", "argmin"]) + def test_argmin_argmax_all_na(self, method, data, na_value): + # overriding because Sparse[int64, 0] cannot handle na_value + self._check_unsupported(data) + super().test_argmin_argmax_all_na(method, data, na_value) + + @pytest.mark.fails_arm_wheels + @pytest.mark.parametrize("box", [pd.array, pd.Series, pd.DataFrame]) + def test_equals(self, data, na_value, as_series, box): + self._check_unsupported(data) + super().test_equals(data, na_value, as_series, box) + + @pytest.mark.fails_arm_wheels + def test_equals_same_data_different_object(self, data): + super().test_equals_same_data_different_object(data) + + @pytest.mark.parametrize( + "func, na_action, expected", + [ + (lambda x: x, None, SparseArray([1.0, np.nan])), + (lambda x: x, "ignore", SparseArray([1.0, np.nan])), + (str, None, SparseArray(["1.0", "nan"], fill_value="nan")), + (str, "ignore", SparseArray(["1.0", np.nan])), + ], + ) + def test_map(self, func, na_action, expected): + # GH52096 + data = SparseArray([1, np.nan]) + result = data.map(func, na_action=na_action) + tm.assert_extension_array_equal(result, expected) + + @pytest.mark.parametrize("na_action", [None, "ignore"]) + def test_map_raises(self, data, na_action): + # GH52096 + msg = "fill value in the sparse values not supported" + with pytest.raises(ValueError, match=msg): + data.map(lambda x: np.nan, na_action=na_action) + + @pytest.mark.xfail(raises=TypeError, reason="no sparse StringDtype") + def test_astype_string(self, data, nullable_string_dtype): + # TODO: this fails bc we do not pass through nullable_string_dtype; + # If we did, the 0-cases would xpass + super().test_astype_string(data) + + series_scalar_exc = None + frame_scalar_exc = None + divmod_exc = None + series_array_exc = None + + def _skip_if_different_combine(self, data): + if data.fill_value == 0: + # arith ops call on dtype.fill_value so that the sparsity + # is maintained. Combine can't be called on a dtype in + # general, so we can't make the expected. This is tested elsewhere + pytest.skip("Incorrected expected from Series.combine and tested elsewhere") + + def test_arith_series_with_scalar(self, data, all_arithmetic_operators): + self._skip_if_different_combine(data) + super().test_arith_series_with_scalar(data, all_arithmetic_operators) + + def test_arith_series_with_array(self, data, all_arithmetic_operators): + self._skip_if_different_combine(data) + super().test_arith_series_with_array(data, all_arithmetic_operators) + + def test_arith_frame_with_scalar(self, data, all_arithmetic_operators, request): + if data.dtype.fill_value != 0: + pass + elif all_arithmetic_operators.strip("_") not in [ + "mul", + "rmul", + "floordiv", + "rfloordiv", + "pow", + "mod", + "rmod", + ]: + mark = pytest.mark.xfail(reason="result dtype.fill_value mismatch") + request.applymarker(mark) + super().test_arith_frame_with_scalar(data, all_arithmetic_operators) + + def _compare_other( + self, ser: pd.Series, data_for_compare: SparseArray, comparison_op, other + ): + op = comparison_op + + result = op(data_for_compare, other) + if isinstance(other, pd.Series): + assert isinstance(result, pd.Series) + assert isinstance(result.dtype, SparseDtype) + else: + assert isinstance(result, SparseArray) + assert result.dtype.subtype == np.bool_ + + if isinstance(other, pd.Series): + fill_value = op(data_for_compare.fill_value, other._values.fill_value) + expected = SparseArray( + op(data_for_compare.to_dense(), np.asarray(other)), + fill_value=fill_value, + dtype=np.bool_, + ) + + else: + fill_value = np.all( + op(np.asarray(data_for_compare.fill_value), np.asarray(other)) + ) + + expected = SparseArray( + op(data_for_compare.to_dense(), np.asarray(other)), + fill_value=fill_value, + dtype=np.bool_, + ) + if isinstance(other, pd.Series): + # error: Incompatible types in assignment + expected = pd.Series(expected) # type: ignore[assignment] + tm.assert_equal(result, expected) + + def test_scalar(self, data_for_compare: SparseArray, comparison_op): + ser = pd.Series(data_for_compare) + self._compare_other(ser, data_for_compare, comparison_op, 0) + self._compare_other(ser, data_for_compare, comparison_op, 1) + self._compare_other(ser, data_for_compare, comparison_op, -1) + self._compare_other(ser, data_for_compare, comparison_op, np.nan) + + def test_array(self, data_for_compare: SparseArray, comparison_op, request): + if data_for_compare.dtype.fill_value == 0 and comparison_op.__name__ in [ + "eq", + "ge", + "le", + ]: + mark = pytest.mark.xfail(reason="Wrong fill_value") + request.applymarker(mark) + + arr = np.linspace(-4, 5, 10) + ser = pd.Series(data_for_compare) + self._compare_other(ser, data_for_compare, comparison_op, arr) + + def test_sparse_array(self, data_for_compare: SparseArray, comparison_op, request): + if data_for_compare.dtype.fill_value == 0 and comparison_op.__name__ != "gt": + mark = pytest.mark.xfail(reason="Wrong fill_value") + request.applymarker(mark) + + ser = pd.Series(data_for_compare) + arr = data_for_compare + 1 + self._compare_other(ser, data_for_compare, comparison_op, arr) + arr = data_for_compare * 2 + self._compare_other(ser, data_for_compare, comparison_op, arr) + + @pytest.mark.xfail(reason="Different repr") + def test_array_repr(self, data, size): + super().test_array_repr(data, size) + + @pytest.mark.xfail(reason="result does not match expected") + @pytest.mark.parametrize("as_index", [True, False]) + def test_groupby_extension_agg(self, as_index, data_for_grouping): + super().test_groupby_extension_agg(as_index, data_for_grouping) + + +def test_array_type_with_arg(dtype): + assert dtype.construct_array_type() is SparseArray diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_string.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_string.py new file mode 100644 index 0000000000000000000000000000000000000000..71d4f7cc5c4bffcec673867f3675e4cfc1df2b3d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/extension/test_string.py @@ -0,0 +1,293 @@ +""" +This file contains a minimal set of tests for compliance with the extension +array interface test suite, and should contain no other tests. +The test suite for the full functionality of the array is located in +`pandas/tests/arrays/`. + +The tests in this file are inherited from the BaseExtensionTests, and only +minimal tweaks should be applied to get the tests passing (by overwriting a +parent method). + +Additional tests should either be added to one of the BaseExtensionTests +classes (if they are relevant for the extension interface for all dtypes), or +be added to the array-specific tests in `pandas/tests/arrays/`. + +""" +from __future__ import annotations + +import string +from typing import cast + +import numpy as np +import pytest + +from pandas.compat import HAS_PYARROW + +from pandas.core.dtypes.base import StorageExtensionDtype + +import pandas as pd +import pandas._testing as tm +from pandas.api.types import is_string_dtype +from pandas.core.arrays import ArrowStringArray +from pandas.core.arrays.string_ import StringDtype +from pandas.tests.arrays.string_.test_string import string_dtype_highest_priority +from pandas.tests.extension import base + + +def maybe_split_array(arr, chunked): + if not chunked: + return arr + elif arr.dtype.storage != "pyarrow": + return arr + + pa = pytest.importorskip("pyarrow") + + arrow_array = arr._pa_array + split = len(arrow_array) // 2 + arrow_array = pa.chunked_array( + [*arrow_array[:split].chunks, *arrow_array[split:].chunks] + ) + assert arrow_array.num_chunks == 2 + return type(arr)(arrow_array) + + +@pytest.fixture(params=[True, False]) +def chunked(request): + return request.param + + +@pytest.fixture +def dtype(string_dtype_arguments): + storage, na_value = string_dtype_arguments + return StringDtype(storage=storage, na_value=na_value) + + +@pytest.fixture +def data(dtype, chunked): + strings = np.random.default_rng(2).choice(list(string.ascii_letters), size=100) + while strings[0] == strings[1]: + strings = np.random.default_rng(2).choice(list(string.ascii_letters), size=100) + + arr = dtype.construct_array_type()._from_sequence(strings, dtype=dtype) + return maybe_split_array(arr, chunked) + + +@pytest.fixture +def data_missing(dtype, chunked): + """Length 2 array with [NA, Valid]""" + arr = dtype.construct_array_type()._from_sequence([pd.NA, "A"], dtype=dtype) + return maybe_split_array(arr, chunked) + + +@pytest.fixture +def data_for_sorting(dtype, chunked): + arr = dtype.construct_array_type()._from_sequence(["B", "C", "A"], dtype=dtype) + return maybe_split_array(arr, chunked) + + +@pytest.fixture +def data_missing_for_sorting(dtype, chunked): + arr = dtype.construct_array_type()._from_sequence(["B", pd.NA, "A"], dtype=dtype) + return maybe_split_array(arr, chunked) + + +@pytest.fixture +def data_for_grouping(dtype, chunked): + arr = dtype.construct_array_type()._from_sequence( + ["B", "B", pd.NA, pd.NA, "A", "A", "B", "C"], dtype=dtype + ) + return maybe_split_array(arr, chunked) + + +class TestStringArray(base.ExtensionTests): + def test_eq_with_str(self, dtype): + super().test_eq_with_str(dtype) + + if dtype.na_value is pd.NA: + # only the NA-variant supports parametrized string alias + assert dtype == f"string[{dtype.storage}]" + elif dtype.storage == "pyarrow": + with tm.assert_produces_warning(FutureWarning): + assert dtype == "string[pyarrow_numpy]" + + def test_is_not_string_type(self, dtype): + # Different from BaseDtypeTests.test_is_not_string_type + # because StringDtype is a string type + assert is_string_dtype(dtype) + + def test_is_dtype_from_name(self, dtype, using_infer_string): + if dtype.na_value is np.nan and not using_infer_string: + result = type(dtype).is_dtype(dtype.name) + assert result is False + else: + super().test_is_dtype_from_name(dtype) + + def test_construct_from_string_own_name(self, dtype, using_infer_string): + if dtype.na_value is np.nan and not using_infer_string: + with pytest.raises(TypeError, match="Cannot construct a 'StringDtype'"): + dtype.construct_from_string(dtype.name) + else: + super().test_construct_from_string_own_name(dtype) + + def test_view(self, data): + if data.dtype.storage == "pyarrow": + pytest.skip(reason="2D support not implemented for ArrowStringArray") + super().test_view(data) + + def test_from_dtype(self, data): + # base test uses string representation of dtype + pass + + def test_transpose(self, data): + if data.dtype.storage == "pyarrow": + pytest.skip(reason="2D support not implemented for ArrowStringArray") + super().test_transpose(data) + + def test_setitem_preserves_views(self, data): + if data.dtype.storage == "pyarrow": + pytest.skip(reason="2D support not implemented for ArrowStringArray") + super().test_setitem_preserves_views(data) + + def test_dropna_array(self, data_missing): + result = data_missing.dropna() + expected = data_missing[[1]] + tm.assert_extension_array_equal(result, expected) + + def test_fillna_no_op_returns_copy(self, data): + data = data[~data.isna()] + + valid = data[0] + result = data.fillna(valid) + assert result is not data + tm.assert_extension_array_equal(result, data) + + result = data.fillna(method="backfill") + assert result is not data + tm.assert_extension_array_equal(result, data) + + def _get_expected_exception( + self, op_name: str, obj, other + ) -> type[Exception] | tuple[type[Exception], ...] | None: + if op_name in [ + "__mod__", + "__rmod__", + "__divmod__", + "__rdivmod__", + "__pow__", + "__rpow__", + ]: + return TypeError + elif op_name in ["__mul__", "__rmul__"]: + # Can only multiply strings by integers + return TypeError + elif op_name in [ + "__truediv__", + "__rtruediv__", + "__floordiv__", + "__rfloordiv__", + "__sub__", + "__rsub__", + ]: + return TypeError + + return None + + def _supports_reduction(self, ser: pd.Series, op_name: str) -> bool: + return ( + op_name in ["min", "max", "sum"] + or ser.dtype.na_value is np.nan # type: ignore[union-attr] + and op_name in ("any", "all") + ) + + def _supports_accumulation(self, ser: pd.Series, op_name: str) -> bool: + assert isinstance(ser.dtype, StorageExtensionDtype) + return op_name in ["cummin", "cummax", "cumsum"] + + def _cast_pointwise_result(self, op_name: str, obj, other, pointwise_result): + dtype = cast(StringDtype, tm.get_dtype(obj)) + if op_name in ["__add__", "__radd__"]: + cast_to = dtype + dtype_other = tm.get_dtype(other) if not isinstance(other, str) else None + if isinstance(dtype_other, StringDtype): + cast_to = string_dtype_highest_priority(dtype, dtype_other) + elif dtype.na_value is np.nan: + cast_to = np.bool_ # type: ignore[assignment] + elif dtype.storage == "pyarrow": + cast_to = "bool[pyarrow]" # type: ignore[assignment] + else: + cast_to = "boolean" # type: ignore[assignment] + return pointwise_result.astype(cast_to) + + def test_compare_scalar(self, data, comparison_op): + ser = pd.Series(data) + self._compare_other(ser, data, comparison_op, "abc") + + def test_combine_add(self, data_repeated, using_infer_string, request): + dtype = next(data_repeated(1)).dtype + if using_infer_string and ( + (dtype.na_value is pd.NA) and dtype.storage == "python" + ): + mark = pytest.mark.xfail( + reason="The pointwise operation result will be inferred to " + "string[nan, pyarrow], which does not match the input dtype" + ) + request.applymarker(mark) + super().test_combine_add(data_repeated) + + def test_arith_series_with_array( + self, data, all_arithmetic_operators, using_infer_string, request + ): + dtype = data.dtype + if ( + using_infer_string + and all_arithmetic_operators == "__radd__" + and dtype.na_value is pd.NA + and (HAS_PYARROW or dtype.storage == "pyarrow") + ): + # TODO(infer_string) + mark = pytest.mark.xfail( + reason="The pointwise operation result will be inferred to " + "string[nan, pyarrow], which does not match the input dtype" + ) + request.applymarker(mark) + super().test_arith_series_with_array(data, all_arithmetic_operators) + + +class Test2DCompat(base.Dim2CompatTests): + @pytest.fixture(autouse=True) + def arrow_not_supported(self, data): + if isinstance(data, ArrowStringArray): + pytest.skip(reason="2D support not implemented for ArrowStringArray") + + +def test_searchsorted_with_na_raises(data_for_sorting, as_series): + # GH50447 + b, c, a = data_for_sorting + arr = data_for_sorting.take([2, 0, 1]) # to get [a, b, c] + arr[-1] = pd.NA + + if as_series: + arr = pd.Series(arr) + + msg = ( + "searchsorted requires array to be sorted, " + "which is impossible with NAs present." + ) + with pytest.raises(ValueError, match=msg): + arr.searchsorted(b) + + +def test_mixed_object_comparison(dtype): + # GH#60228 + ser = pd.Series(["a", "b"], dtype=dtype) + + mixed = pd.Series([1, "b"], dtype=object) + + result = ser == mixed + expected = pd.Series([False, True], dtype=bool) + if dtype.storage == "python" and dtype.na_value is pd.NA: + expected = expected.astype("boolean") + elif dtype.storage == "pyarrow" and dtype.na_value is pd.NA: + expected = expected.astype("bool[pyarrow]") + + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/common.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/common.py new file mode 100644 index 0000000000000000000000000000000000000000..fc41d7907a240f0dd9dc19e0ae1296bee86be421 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/common.py @@ -0,0 +1,63 @@ +from __future__ import annotations + +from typing import TYPE_CHECKING + +from pandas import ( + DataFrame, + concat, +) + +if TYPE_CHECKING: + from pandas._typing import AxisInt + + +def _check_mixed_float(df, dtype=None): + # float16 are most likely to be upcasted to float32 + dtypes = {"A": "float32", "B": "float32", "C": "float16", "D": "float64"} + if isinstance(dtype, str): + dtypes = {k: dtype for k, v in dtypes.items()} + elif isinstance(dtype, dict): + dtypes.update(dtype) + if dtypes.get("A"): + assert df.dtypes["A"] == dtypes["A"] + if dtypes.get("B"): + assert df.dtypes["B"] == dtypes["B"] + if dtypes.get("C"): + assert df.dtypes["C"] == dtypes["C"] + if dtypes.get("D"): + assert df.dtypes["D"] == dtypes["D"] + + +def _check_mixed_int(df, dtype=None): + dtypes = {"A": "int32", "B": "uint64", "C": "uint8", "D": "int64"} + if isinstance(dtype, str): + dtypes = {k: dtype for k, v in dtypes.items()} + elif isinstance(dtype, dict): + dtypes.update(dtype) + if dtypes.get("A"): + assert df.dtypes["A"] == dtypes["A"] + if dtypes.get("B"): + assert df.dtypes["B"] == dtypes["B"] + if dtypes.get("C"): + assert df.dtypes["C"] == dtypes["C"] + if dtypes.get("D"): + assert df.dtypes["D"] == dtypes["D"] + + +def zip_frames(frames: list[DataFrame], axis: AxisInt = 1) -> DataFrame: + """ + take a list of frames, zip them together under the + assumption that these all have the first frames' index/columns. + + Returns + ------- + new_frame : DataFrame + """ + if axis == 1: + columns = frames[0].columns + zipped = [f.loc[:, c] for c in columns for f in frames] + return concat(zipped, axis=1) + else: + index = frames[0].index + zipped = [f.loc[i, :] for i in index for f in frames] + return DataFrame(zipped) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/conftest.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/conftest.py new file mode 100644 index 0000000000000000000000000000000000000000..b7293946d38c9de9ef4b406d0d8fc933d33abfdd --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/conftest.py @@ -0,0 +1,100 @@ +import numpy as np +import pytest + +from pandas import ( + DataFrame, + Index, + NaT, + date_range, +) + + +@pytest.fixture +def datetime_frame() -> DataFrame: + """ + Fixture for DataFrame of floats with DatetimeIndex + + Columns are ['A', 'B', 'C', 'D'] + """ + return DataFrame( + np.random.default_rng(2).standard_normal((100, 4)), + columns=Index(list("ABCD")), + index=date_range("2000-01-01", periods=100, freq="B"), + ) + + +@pytest.fixture +def float_string_frame(): + """ + Fixture for DataFrame of floats and strings with index of unique strings + + Columns are ['A', 'B', 'C', 'D', 'foo']. + """ + df = DataFrame( + np.random.default_rng(2).standard_normal((30, 4)), + index=Index([f"foo_{i}" for i in range(30)], dtype=object), + columns=Index(list("ABCD")), + ) + df["foo"] = "bar" + return df + + +@pytest.fixture +def mixed_float_frame(): + """ + Fixture for DataFrame of different float types with index of unique strings + + Columns are ['A', 'B', 'C', 'D']. + """ + df = DataFrame( + { + col: np.random.default_rng(2).random(30, dtype=dtype) + for col, dtype in zip( + list("ABCD"), ["float32", "float32", "float32", "float64"] + ) + }, + index=Index([f"foo_{i}" for i in range(30)], dtype=object), + ) + # not supported by numpy random + df["C"] = df["C"].astype("float16") + return df + + +@pytest.fixture +def mixed_int_frame(): + """ + Fixture for DataFrame of different int types with index of unique strings + + Columns are ['A', 'B', 'C', 'D']. + """ + return DataFrame( + { + col: np.ones(30, dtype=dtype) + for col, dtype in zip(list("ABCD"), ["int32", "uint64", "uint8", "int64"]) + }, + index=Index([f"foo_{i}" for i in range(30)], dtype=object), + ) + + +@pytest.fixture +def timezone_frame(): + """ + Fixture for DataFrame of date_range Series with different time zones + + Columns are ['A', 'B', 'C']; some entries are missing + + A B C + 0 2013-01-01 2013-01-01 00:00:00-05:00 2013-01-01 00:00:00+01:00 + 1 2013-01-02 NaT NaT + 2 2013-01-03 2013-01-03 00:00:00-05:00 2013-01-03 00:00:00+01:00 + """ + df = DataFrame( + { + "A": date_range("20130101", periods=3), + "B": date_range("20130101", periods=3, tz="US/Eastern"), + "C": date_range("20130101", periods=3, tz="CET"), + } + ) + df.iloc[1, 1] = NaT + df.iloc[1, 2] = NaT + return df diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/constructors/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/constructors/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/constructors/test_from_dict.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/constructors/test_from_dict.py new file mode 100644 index 0000000000000000000000000000000000000000..845174bbf600e0211d4514ff6b713e0b3b40d756 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/constructors/test_from_dict.py @@ -0,0 +1,223 @@ +from collections import OrderedDict + +import numpy as np +import pytest + +from pandas import ( + DataFrame, + Index, + MultiIndex, + RangeIndex, + Series, +) +import pandas._testing as tm + + +class TestFromDict: + # Note: these tests are specific to the from_dict method, not for + # passing dictionaries to DataFrame.__init__ + + def test_constructor_list_of_odicts(self): + data = [ + OrderedDict([["a", 1.5], ["b", 3], ["c", 4], ["d", 6]]), + OrderedDict([["a", 1.5], ["b", 3], ["d", 6]]), + OrderedDict([["a", 1.5], ["d", 6]]), + OrderedDict(), + OrderedDict([["a", 1.5], ["b", 3], ["c", 4]]), + OrderedDict([["b", 3], ["c", 4], ["d", 6]]), + ] + + result = DataFrame(data) + expected = DataFrame.from_dict( + dict(zip(range(len(data)), data)), orient="index" + ) + tm.assert_frame_equal(result, expected.reindex(result.index)) + + def test_constructor_single_row(self): + data = [OrderedDict([["a", 1.5], ["b", 3], ["c", 4], ["d", 6]])] + + result = DataFrame(data) + expected = DataFrame.from_dict(dict(zip([0], data)), orient="index").reindex( + result.index + ) + tm.assert_frame_equal(result, expected) + + def test_constructor_list_of_series(self): + data = [ + OrderedDict([["a", 1.5], ["b", 3.0], ["c", 4.0]]), + OrderedDict([["a", 1.5], ["b", 3.0], ["c", 6.0]]), + ] + sdict = OrderedDict(zip(["x", "y"], data)) + idx = Index(["a", "b", "c"]) + + # all named + data2 = [ + Series([1.5, 3, 4], idx, dtype="O", name="x"), + Series([1.5, 3, 6], idx, name="y"), + ] + result = DataFrame(data2) + expected = DataFrame.from_dict(sdict, orient="index") + tm.assert_frame_equal(result, expected) + + # some unnamed + data2 = [ + Series([1.5, 3, 4], idx, dtype="O", name="x"), + Series([1.5, 3, 6], idx), + ] + result = DataFrame(data2) + + sdict = OrderedDict(zip(["x", "Unnamed 0"], data)) + expected = DataFrame.from_dict(sdict, orient="index") + tm.assert_frame_equal(result, expected) + + # none named + data = [ + OrderedDict([["a", 1.5], ["b", 3], ["c", 4], ["d", 6]]), + OrderedDict([["a", 1.5], ["b", 3], ["d", 6]]), + OrderedDict([["a", 1.5], ["d", 6]]), + OrderedDict(), + OrderedDict([["a", 1.5], ["b", 3], ["c", 4]]), + OrderedDict([["b", 3], ["c", 4], ["d", 6]]), + ] + data = [Series(d) for d in data] + + result = DataFrame(data) + sdict = OrderedDict(zip(range(len(data)), data)) + expected = DataFrame.from_dict(sdict, orient="index") + tm.assert_frame_equal(result, expected.reindex(result.index)) + + result2 = DataFrame(data, index=np.arange(6, dtype=np.int64)) + tm.assert_frame_equal(result, result2) + + result = DataFrame([Series(dtype=object)]) + expected = DataFrame(index=[0]) + tm.assert_frame_equal(result, expected) + + data = [ + OrderedDict([["a", 1.5], ["b", 3.0], ["c", 4.0]]), + OrderedDict([["a", 1.5], ["b", 3.0], ["c", 6.0]]), + ] + sdict = OrderedDict(zip(range(len(data)), data)) + + idx = Index(["a", "b", "c"]) + data2 = [Series([1.5, 3, 4], idx, dtype="O"), Series([1.5, 3, 6], idx)] + result = DataFrame(data2) + expected = DataFrame.from_dict(sdict, orient="index") + tm.assert_frame_equal(result, expected) + + def test_constructor_orient(self, float_string_frame): + data_dict = float_string_frame.T._series + recons = DataFrame.from_dict(data_dict, orient="index") + expected = float_string_frame.reindex(index=recons.index) + tm.assert_frame_equal(recons, expected) + + # dict of sequence + a = {"hi": [32, 3, 3], "there": [3, 5, 3]} + rs = DataFrame.from_dict(a, orient="index") + xp = DataFrame.from_dict(a).T.reindex(list(a.keys())) + tm.assert_frame_equal(rs, xp) + + def test_constructor_from_ordered_dict(self): + # GH#8425 + a = OrderedDict( + [ + ("one", OrderedDict([("col_a", "foo1"), ("col_b", "bar1")])), + ("two", OrderedDict([("col_a", "foo2"), ("col_b", "bar2")])), + ("three", OrderedDict([("col_a", "foo3"), ("col_b", "bar3")])), + ] + ) + expected = DataFrame.from_dict(a, orient="columns").T + result = DataFrame.from_dict(a, orient="index") + tm.assert_frame_equal(result, expected) + + def test_from_dict_columns_parameter(self): + # GH#18529 + # Test new columns parameter for from_dict that was added to make + # from_items(..., orient='index', columns=[...]) easier to replicate + result = DataFrame.from_dict( + OrderedDict([("A", [1, 2]), ("B", [4, 5])]), + orient="index", + columns=["one", "two"], + ) + expected = DataFrame([[1, 2], [4, 5]], index=["A", "B"], columns=["one", "two"]) + tm.assert_frame_equal(result, expected) + + msg = "cannot use columns parameter with orient='columns'" + with pytest.raises(ValueError, match=msg): + DataFrame.from_dict( + {"A": [1, 2], "B": [4, 5]}, + orient="columns", + columns=["one", "two"], + ) + with pytest.raises(ValueError, match=msg): + DataFrame.from_dict({"A": [1, 2], "B": [4, 5]}, columns=["one", "two"]) + + @pytest.mark.parametrize( + "data_dict, orient, expected", + [ + ({}, "index", RangeIndex(0)), + ( + [{("a",): 1}, {("a",): 2}], + "columns", + Index([("a",)], tupleize_cols=False), + ), + ( + [OrderedDict([(("a",), 1), (("b",), 2)])], + "columns", + Index([("a",), ("b",)], tupleize_cols=False), + ), + ([{("a", "b"): 1}], "columns", Index([("a", "b")], tupleize_cols=False)), + ], + ) + def test_constructor_from_dict_tuples(self, data_dict, orient, expected): + # GH#16769 + df = DataFrame.from_dict(data_dict, orient) + result = df.columns + tm.assert_index_equal(result, expected) + + def test_frame_dict_constructor_empty_series(self): + s1 = Series( + [1, 2, 3, 4], index=MultiIndex.from_tuples([(1, 2), (1, 3), (2, 2), (2, 4)]) + ) + s2 = Series( + [1, 2, 3, 4], index=MultiIndex.from_tuples([(1, 2), (1, 3), (3, 2), (3, 4)]) + ) + s3 = Series(dtype=object) + + # it works! + DataFrame({"foo": s1, "bar": s2, "baz": s3}) + DataFrame.from_dict({"foo": s1, "baz": s3, "bar": s2}) + + def test_from_dict_scalars_requires_index(self): + msg = "If using all scalar values, you must pass an index" + with pytest.raises(ValueError, match=msg): + DataFrame.from_dict(OrderedDict([("b", 8), ("a", 5), ("a", 6)])) + + def test_from_dict_orient_invalid(self): + msg = ( + "Expected 'index', 'columns' or 'tight' for orient parameter. " + "Got 'abc' instead" + ) + with pytest.raises(ValueError, match=msg): + DataFrame.from_dict({"foo": 1, "baz": 3, "bar": 2}, orient="abc") + + def test_from_dict_order_with_single_column(self): + data = { + "alpha": { + "value2": 123, + "value1": 532, + "animal": 222, + "plant": False, + "name": "test", + } + } + result = DataFrame.from_dict( + data, + orient="columns", + ) + expected = DataFrame( + [[123], [532], [222], [False], ["test"]], + index=["value2", "value1", "animal", "plant", "name"], + columns=["alpha"], + ) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/constructors/test_from_records.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/constructors/test_from_records.py new file mode 100644 index 0000000000000000000000000000000000000000..58e47ba48f89445ee888c61055ad5a397a192f4a --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/constructors/test_from_records.py @@ -0,0 +1,503 @@ +from collections.abc import Iterator +from datetime import datetime +from decimal import Decimal + +import numpy as np +import pytest +import pytz + +from pandas._config import using_string_dtype + +from pandas.compat import is_platform_little_endian + +from pandas import ( + CategoricalIndex, + DataFrame, + Index, + Interval, + RangeIndex, + Series, + date_range, +) +import pandas._testing as tm + + +class TestFromRecords: + def test_from_records_dt64tz_frame(self): + # GH#51162 don't lose tz when calling from_records with DataFrame input + dti = date_range("2016-01-01", periods=10, tz="US/Pacific") + df = DataFrame({i: dti for i in range(4)}) + with tm.assert_produces_warning(FutureWarning): + res = DataFrame.from_records(df) + tm.assert_frame_equal(res, df) + + def test_from_records_with_datetimes(self): + # this may fail on certain platforms because of a numpy issue + # related GH#6140 + if not is_platform_little_endian(): + pytest.skip("known failure of test on non-little endian") + + # construction with a null in a recarray + # GH#6140 + expected = DataFrame({"EXPIRY": [datetime(2005, 3, 1, 0, 0), None]}) + + arrdata = [np.array([datetime(2005, 3, 1, 0, 0), None])] + dtypes = [("EXPIRY", " None: + self.args = args + + def __getitem__(self, i): + return self.args[i] + + def __iter__(self) -> Iterator: + return iter(self.args) + + recs = [Record(1, 2, 3), Record(4, 5, 6), Record(7, 8, 9)] + tups = [tuple(rec) for rec in recs] + + result = DataFrame.from_records(recs) + expected = DataFrame.from_records(tups) + tm.assert_frame_equal(result, expected) + + def test_from_records_len0_with_columns(self): + # GH#2633 + result = DataFrame.from_records([], index="foo", columns=["foo", "bar"]) + expected = Index(["bar"]) + + assert len(result) == 0 + assert result.index.name == "foo" + tm.assert_index_equal(result.columns, expected) + + def test_from_records_series_list_dict(self): + # GH#27358 + expected = DataFrame([[{"a": 1, "b": 2}, {"a": 3, "b": 4}]]).T + data = Series([[{"a": 1, "b": 2}], [{"a": 3, "b": 4}]]) + result = DataFrame.from_records(data) + tm.assert_frame_equal(result, expected) + + def test_from_records_series_categorical_index(self): + # GH#32805 + index = CategoricalIndex( + [Interval(-20, -10), Interval(-10, 0), Interval(0, 10)] + ) + series_of_dicts = Series([{"a": 1}, {"a": 2}, {"b": 3}], index=index) + frame = DataFrame.from_records(series_of_dicts, index=index) + expected = DataFrame( + {"a": [1, 2, np.nan], "b": [np.nan, np.nan, 3]}, index=index + ) + tm.assert_frame_equal(frame, expected) + + def test_frame_from_records_utc(self): + rec = {"datum": 1.5, "begin_time": datetime(2006, 4, 27, tzinfo=pytz.utc)} + + # it works + DataFrame.from_records([rec], index="begin_time") + + def test_from_records_to_records(self): + # from numpy documentation + arr = np.zeros((2,), dtype=("i4,f4,S10")) + arr[:] = [(1, 2.0, "Hello"), (2, 3.0, "World")] + + DataFrame.from_records(arr) + + index = Index(np.arange(len(arr))[::-1]) + indexed_frame = DataFrame.from_records(arr, index=index) + tm.assert_index_equal(indexed_frame.index, index) + + # without names, it should go to last ditch + arr2 = np.zeros((2, 3)) + tm.assert_frame_equal(DataFrame.from_records(arr2), DataFrame(arr2)) + + # wrong length + msg = "|".join( + [ + r"Length of values \(2\) does not match length of index \(1\)", + ] + ) + with pytest.raises(ValueError, match=msg): + DataFrame.from_records(arr, index=index[:-1]) + + indexed_frame = DataFrame.from_records(arr, index="f1") + + # what to do? + records = indexed_frame.to_records() + assert len(records.dtype.names) == 3 + + records = indexed_frame.to_records(index=False) + assert len(records.dtype.names) == 2 + assert "index" not in records.dtype.names + + def test_from_records_nones(self): + tuples = [(1, 2, None, 3), (1, 2, None, 3), (None, 2, 5, 3)] + + df = DataFrame.from_records(tuples, columns=["a", "b", "c", "d"]) + assert np.isnan(df["c"][0]) + + def test_from_records_iterator(self): + arr = np.array( + [(1.0, 1.0, 2, 2), (3.0, 3.0, 4, 4), (5.0, 5.0, 6, 6), (7.0, 7.0, 8, 8)], + dtype=[ + ("x", np.float64), + ("u", np.float32), + ("y", np.int64), + ("z", np.int32), + ], + ) + df = DataFrame.from_records(iter(arr), nrows=2) + xp = DataFrame( + { + "x": np.array([1.0, 3.0], dtype=np.float64), + "u": np.array([1.0, 3.0], dtype=np.float32), + "y": np.array([2, 4], dtype=np.int64), + "z": np.array([2, 4], dtype=np.int32), + } + ) + tm.assert_frame_equal(df.reindex_like(xp), xp) + + # no dtypes specified here, so just compare with the default + arr = [(1.0, 2), (3.0, 4), (5.0, 6), (7.0, 8)] + df = DataFrame.from_records(iter(arr), columns=["x", "y"], nrows=2) + tm.assert_frame_equal(df, xp.reindex(columns=["x", "y"]), check_dtype=False) + + def test_from_records_tuples_generator(self): + def tuple_generator(length): + for i in range(length): + letters = "ABCDEFGHIJKLMNOPQRSTUVWXYZ" + yield (i, letters[i % len(letters)], i / length) + + columns_names = ["Integer", "String", "Float"] + columns = [ + [i[j] for i in tuple_generator(10)] for j in range(len(columns_names)) + ] + data = {"Integer": columns[0], "String": columns[1], "Float": columns[2]} + expected = DataFrame(data, columns=columns_names) + + generator = tuple_generator(10) + result = DataFrame.from_records(generator, columns=columns_names) + tm.assert_frame_equal(result, expected) + + def test_from_records_lists_generator(self): + def list_generator(length): + for i in range(length): + letters = "ABCDEFGHIJKLMNOPQRSTUVWXYZ" + yield [i, letters[i % len(letters)], i / length] + + columns_names = ["Integer", "String", "Float"] + columns = [ + [i[j] for i in list_generator(10)] for j in range(len(columns_names)) + ] + data = {"Integer": columns[0], "String": columns[1], "Float": columns[2]} + expected = DataFrame(data, columns=columns_names) + + generator = list_generator(10) + result = DataFrame.from_records(generator, columns=columns_names) + tm.assert_frame_equal(result, expected) + + def test_from_records_columns_not_modified(self): + tuples = [(1, 2, 3), (1, 2, 3), (2, 5, 3)] + + columns = ["a", "b", "c"] + original_columns = list(columns) + + DataFrame.from_records(tuples, columns=columns, index="a") + + assert columns == original_columns + + def test_from_records_decimal(self): + tuples = [(Decimal("1.5"),), (Decimal("2.5"),), (None,)] + + df = DataFrame.from_records(tuples, columns=["a"]) + assert df["a"].dtype == object + + df = DataFrame.from_records(tuples, columns=["a"], coerce_float=True) + assert df["a"].dtype == np.float64 + assert np.isnan(df["a"].values[-1]) + + def test_from_records_duplicates(self): + result = DataFrame.from_records([(1, 2, 3), (4, 5, 6)], columns=["a", "b", "a"]) + + expected = DataFrame([(1, 2, 3), (4, 5, 6)], columns=["a", "b", "a"]) + + tm.assert_frame_equal(result, expected) + + def test_from_records_set_index_name(self): + def create_dict(order_id): + return { + "order_id": order_id, + "quantity": np.random.default_rng(2).integers(1, 10), + "price": np.random.default_rng(2).integers(1, 10), + } + + documents = [create_dict(i) for i in range(10)] + # demo missing data + documents.append({"order_id": 10, "quantity": 5}) + + result = DataFrame.from_records(documents, index="order_id") + assert result.index.name == "order_id" + + # MultiIndex + result = DataFrame.from_records(documents, index=["order_id", "quantity"]) + assert result.index.names == ("order_id", "quantity") + + def test_from_records_misc_brokenness(self): + # GH#2179 + + data = {1: ["foo"], 2: ["bar"]} + + result = DataFrame.from_records(data, columns=["a", "b"]) + exp = DataFrame(data, columns=["a", "b"]) + tm.assert_frame_equal(result, exp) + + # overlap in index/index_names + + data = {"a": [1, 2, 3], "b": [4, 5, 6]} + + result = DataFrame.from_records(data, index=["a", "b", "c"]) + exp = DataFrame(data, index=["a", "b", "c"]) + tm.assert_frame_equal(result, exp) + + def test_from_records_misc_brokenness2(self): + # GH#2623 + rows = [] + rows.append([datetime(2010, 1, 1), 1]) + rows.append([datetime(2010, 1, 2), "hi"]) # test col upconverts to obj + result = DataFrame.from_records(rows, columns=["date", "test"]) + expected = DataFrame( + {"date": [row[0] for row in rows], "test": [row[1] for row in rows]} + ) + tm.assert_frame_equal(result, expected) + assert result.dtypes["test"] == np.dtype(object) + + def test_from_records_misc_brokenness3(self): + rows = [] + rows.append([datetime(2010, 1, 1), 1]) + rows.append([datetime(2010, 1, 2), 1]) + result = DataFrame.from_records(rows, columns=["date", "test"]) + expected = DataFrame( + {"date": [row[0] for row in rows], "test": [row[1] for row in rows]} + ) + tm.assert_frame_equal(result, expected) + + def test_from_records_empty(self): + # GH#3562 + result = DataFrame.from_records([], columns=["a", "b", "c"]) + expected = DataFrame(columns=["a", "b", "c"]) + tm.assert_frame_equal(result, expected) + + result = DataFrame.from_records([], columns=["a", "b", "b"]) + expected = DataFrame(columns=["a", "b", "b"]) + tm.assert_frame_equal(result, expected) + + def test_from_records_empty_with_nonempty_fields_gh3682(self): + a = np.array([(1, 2)], dtype=[("id", np.int64), ("value", np.int64)]) + df = DataFrame.from_records(a, index="id") + + ex_index = Index([1], name="id") + expected = DataFrame({"value": [2]}, index=ex_index, columns=["value"]) + tm.assert_frame_equal(df, expected) + + b = a[:0] + df2 = DataFrame.from_records(b, index="id") + tm.assert_frame_equal(df2, df.iloc[:0]) + + def test_from_records_empty2(self): + # GH#42456 + dtype = [("prop", int)] + shape = (0, len(dtype)) + arr = np.empty(shape, dtype=dtype) + + result = DataFrame.from_records(arr) + expected = DataFrame({"prop": np.array([], dtype=int)}) + tm.assert_frame_equal(result, expected) + + alt = DataFrame(arr) + tm.assert_frame_equal(alt, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_coercion.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_coercion.py new file mode 100644 index 0000000000000000000000000000000000000000..6186dcd2868cfc6a3e1ca4f3afb1bc2151284963 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_coercion.py @@ -0,0 +1,209 @@ +""" +Tests for values coercion in setitem-like operations on DataFrame. + +For the most part, these should be multi-column DataFrames, otherwise +we would share the tests with Series. +""" +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + DataFrame, + MultiIndex, + NaT, + Series, + Timestamp, + date_range, +) +import pandas._testing as tm + + +class TestDataFrameSetitemCoercion: + @pytest.mark.parametrize("consolidate", [True, False]) + def test_loc_setitem_multiindex_columns(self, consolidate): + # GH#18415 Setting values in a single column preserves dtype, + # while setting them in multiple columns did unwanted cast. + + # Note that A here has 2 blocks, below we do the same thing + # with a consolidated frame. + A = DataFrame(np.zeros((6, 5), dtype=np.float32)) + A = pd.concat([A, A], axis=1, keys=[1, 2]) + if consolidate: + A = A._consolidate() + + A.loc[2:3, (1, slice(2, 3))] = np.ones((2, 2), dtype=np.float32) + assert (A.dtypes == np.float32).all() + + A.loc[0:5, (1, slice(2, 3))] = np.ones((6, 2), dtype=np.float32) + + assert (A.dtypes == np.float32).all() + + A.loc[:, (1, slice(2, 3))] = np.ones((6, 2), dtype=np.float32) + assert (A.dtypes == np.float32).all() + + # TODO: i think this isn't about MultiIndex and could be done with iloc? + + +def test_37477(): + # fixed by GH#45121 + orig = DataFrame({"A": [1, 2, 3], "B": [3, 4, 5]}) + expected = DataFrame({"A": [1, 2, 3], "B": [3, 1.2, 5]}) + + df = orig.copy() + with tm.assert_produces_warning( + FutureWarning, match="Setting an item of incompatible dtype" + ): + df.at[1, "B"] = 1.2 + tm.assert_frame_equal(df, expected) + + df = orig.copy() + with tm.assert_produces_warning( + FutureWarning, match="Setting an item of incompatible dtype" + ): + df.loc[1, "B"] = 1.2 + tm.assert_frame_equal(df, expected) + + df = orig.copy() + with tm.assert_produces_warning( + FutureWarning, match="Setting an item of incompatible dtype" + ): + df.iat[1, 1] = 1.2 + tm.assert_frame_equal(df, expected) + + df = orig.copy() + with tm.assert_produces_warning( + FutureWarning, match="Setting an item of incompatible dtype" + ): + df.iloc[1, 1] = 1.2 + tm.assert_frame_equal(df, expected) + + +def test_6942(indexer_al): + # check that the .at __setitem__ after setting "Live" actually sets the data + start = Timestamp("2014-04-01") + t1 = Timestamp("2014-04-23 12:42:38.883082") + t2 = Timestamp("2014-04-24 01:33:30.040039") + + dti = date_range(start, periods=1) + orig = DataFrame(index=dti, columns=["timenow", "Live"]) + + df = orig.copy() + indexer_al(df)[start, "timenow"] = t1 + + df["Live"] = True + + df.at[start, "timenow"] = t2 + assert df.iloc[0, 0] == t2 + + +def test_26395(indexer_al): + # .at case fixed by GH#45121 (best guess) + df = DataFrame(index=["A", "B", "C"]) + df["D"] = 0 + + indexer_al(df)["C", "D"] = 2 + expected = DataFrame({"D": [0, 0, 2]}, index=["A", "B", "C"], dtype=np.int64) + tm.assert_frame_equal(df, expected) + + with tm.assert_produces_warning( + FutureWarning, match="Setting an item of incompatible dtype" + ): + indexer_al(df)["C", "D"] = 44.5 + expected = DataFrame( + {"D": [0, 0, 44.5]}, + index=["A", "B", "C"], + columns=["D"], + dtype=np.float64, + ) + tm.assert_frame_equal(df, expected) + + with tm.assert_produces_warning( + FutureWarning, match="Setting an item of incompatible dtype" + ): + indexer_al(df)["C", "D"] = "hello" + expected = DataFrame( + {"D": [0, 0, "hello"]}, + index=["A", "B", "C"], + columns=["D"], + dtype=object, + ) + tm.assert_frame_equal(df, expected) + + +@pytest.mark.xfail(reason="unwanted upcast") +def test_15231(): + df = DataFrame([[1, 2], [3, 4]], columns=["a", "b"]) + df.loc[2] = Series({"a": 5, "b": 6}) + assert (df.dtypes == np.int64).all() + + df.loc[3] = Series({"a": 7}) + + # df["a"] doesn't have any NaNs, should not have been cast + exp_dtypes = Series([np.int64, np.float64], dtype=object, index=["a", "b"]) + tm.assert_series_equal(df.dtypes, exp_dtypes) + + +def test_iloc_setitem_unnecesssary_float_upcasting(): + # GH#12255 + df = DataFrame( + { + 0: np.array([1, 3], dtype=np.float32), + 1: np.array([2, 4], dtype=np.float32), + 2: ["a", "b"], + } + ) + orig = df.copy() + + values = df[0].values.reshape(2, 1) + df.iloc[:, 0:1] = values + + tm.assert_frame_equal(df, orig) + + +@pytest.mark.xfail(reason="unwanted casting to dt64") +def test_12499(): + # TODO: OP in GH#12499 used np.datetim64("NaT") instead of pd.NaT, + # which has consequences for the expected df["two"] (though i think at + # the time it might not have because of a separate bug). See if it makes + # a difference which one we use here. + ts = Timestamp("2016-03-01 03:13:22.98986", tz="UTC") + + data = [{"one": 0, "two": ts}] + orig = DataFrame(data) + df = orig.copy() + df.loc[1] = [np.nan, NaT] + + expected = DataFrame( + {"one": [0, np.nan], "two": Series([ts, NaT], dtype="datetime64[ns, UTC]")} + ) + tm.assert_frame_equal(df, expected) + + data = [{"one": 0, "two": ts}] + df = orig.copy() + df.loc[1, :] = [np.nan, NaT] + tm.assert_frame_equal(df, expected) + + +def test_20476(): + mi = MultiIndex.from_product([["A", "B"], ["a", "b", "c"]]) + df = DataFrame(-1, index=range(3), columns=mi) + filler = DataFrame([[1, 2, 3.0]] * 3, index=range(3), columns=["a", "b", "c"]) + df["A"] = filler + + expected = DataFrame( + { + 0: [1, 1, 1], + 1: [2, 2, 2], + 2: [3.0, 3.0, 3.0], + 3: [-1, -1, -1], + 4: [-1, -1, -1], + 5: [-1, -1, -1], + } + ) + expected.columns = mi + exp_dtypes = Series( + [np.dtype(np.int64)] * 2 + [np.dtype(np.float64)] + [np.dtype(np.int64)] * 3, + index=mi, + ) + tm.assert_series_equal(df.dtypes, exp_dtypes) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_delitem.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_delitem.py new file mode 100644 index 0000000000000000000000000000000000000000..daec991b7a8dbf8de0221f041e767cb9ce58ae29 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_delitem.py @@ -0,0 +1,60 @@ +import re + +import numpy as np +import pytest + +from pandas import ( + DataFrame, + MultiIndex, +) + + +class TestDataFrameDelItem: + def test_delitem(self, float_frame): + del float_frame["A"] + assert "A" not in float_frame + + def test_delitem_multiindex(self): + midx = MultiIndex.from_product([["A", "B"], [1, 2]]) + df = DataFrame(np.random.default_rng(2).standard_normal((4, 4)), columns=midx) + assert len(df.columns) == 4 + assert ("A",) in df.columns + assert "A" in df.columns + + result = df["A"] + assert isinstance(result, DataFrame) + del df["A"] + + assert len(df.columns) == 2 + + # A still in the levels, BUT get a KeyError if trying + # to delete + assert ("A",) not in df.columns + with pytest.raises(KeyError, match=re.escape("('A',)")): + del df[("A",)] + + # behavior of dropped/deleted MultiIndex levels changed from + # GH 2770 to GH 19027: MultiIndex no longer '.__contains__' + # levels which are dropped/deleted + assert "A" not in df.columns + with pytest.raises(KeyError, match=re.escape("('A',)")): + del df["A"] + + def test_delitem_corner(self, float_frame): + f = float_frame.copy() + del f["D"] + assert len(f.columns) == 3 + with pytest.raises(KeyError, match=r"^'D'$"): + del f["D"] + del f["B"] + assert len(f.columns) == 2 + + def test_delitem_col_still_multiindex(self): + arrays = [["a", "b", "c", "top"], ["", "", "", "OD"], ["", "", "", "wx"]] + + tuples = sorted(zip(*arrays)) + index = MultiIndex.from_tuples(tuples) + + df = DataFrame(np.random.default_rng(2).standard_normal((3, 4)), columns=index) + del df[("a", "", "")] + assert isinstance(df.columns, MultiIndex) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_get.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_get.py new file mode 100644 index 0000000000000000000000000000000000000000..5f2651eec683c10097fb623728048b64778c87e8 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_get.py @@ -0,0 +1,27 @@ +import pytest + +from pandas import DataFrame +import pandas._testing as tm + + +class TestGet: + def test_get(self, float_frame): + b = float_frame.get("B") + tm.assert_series_equal(b, float_frame["B"]) + + assert float_frame.get("foo") is None + tm.assert_series_equal( + float_frame.get("foo", float_frame["B"]), float_frame["B"] + ) + + @pytest.mark.parametrize( + "df", + [ + DataFrame(), + DataFrame(columns=list("AB")), + DataFrame(columns=list("AB"), index=range(3)), + ], + ) + def test_get_none(self, df): + # see gh-5652 + assert df.get(None) is None diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_get_value.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_get_value.py new file mode 100644 index 0000000000000000000000000000000000000000..65a1c64a1578ad0cadd9ed6470ab60a2087ffec5 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_get_value.py @@ -0,0 +1,22 @@ +import pytest + +from pandas import ( + DataFrame, + MultiIndex, +) + + +class TestGetValue: + def test_get_set_value_no_partial_indexing(self): + # partial w/ MultiIndex raise exception + index = MultiIndex.from_tuples([(0, 1), (0, 2), (1, 1), (1, 2)]) + df = DataFrame(index=index, columns=range(4)) + with pytest.raises(KeyError, match=r"^0$"): + df._get_value(0, 1) + + def test_get_value(self, float_frame): + for idx in float_frame.index: + for col in float_frame.columns: + result = float_frame._get_value(idx, col) + expected = float_frame[col][idx] + assert result == expected diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_getitem.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_getitem.py new file mode 100644 index 0000000000000000000000000000000000000000..a36b0c0e850b3d0994349065cc5390c9f40cbf60 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_getitem.py @@ -0,0 +1,472 @@ +import re + +import numpy as np +import pytest + +from pandas import ( + Categorical, + CategoricalDtype, + CategoricalIndex, + DataFrame, + DateOffset, + DatetimeIndex, + Index, + MultiIndex, + Series, + Timestamp, + concat, + date_range, + get_dummies, + period_range, +) +import pandas._testing as tm +from pandas.core.arrays import SparseArray + + +class TestGetitem: + def test_getitem_unused_level_raises(self): + # GH#20410 + mi = MultiIndex( + levels=[["a_lot", "onlyone", "notevenone"], [1970, ""]], + codes=[[1, 0], [1, 0]], + ) + df = DataFrame(-1, index=range(3), columns=mi) + + with pytest.raises(KeyError, match="notevenone"): + df["notevenone"] + + def test_getitem_periodindex(self): + rng = period_range("1/1/2000", periods=5) + df = DataFrame(np.random.default_rng(2).standard_normal((10, 5)), columns=rng) + + ts = df[rng[0]] + tm.assert_series_equal(ts, df.iloc[:, 0]) + + ts = df["1/1/2000"] + tm.assert_series_equal(ts, df.iloc[:, 0]) + + def test_getitem_list_of_labels_categoricalindex_cols(self): + # GH#16115 + cats = Categorical([Timestamp("12-31-1999"), Timestamp("12-31-2000")]) + + expected = DataFrame([[1, 0], [0, 1]], dtype="bool", index=[0, 1], columns=cats) + dummies = get_dummies(cats) + result = dummies[list(dummies.columns)] + tm.assert_frame_equal(result, expected) + + def test_getitem_sparse_column_return_type_and_dtype(self): + # https://github.com/pandas-dev/pandas/issues/23559 + data = SparseArray([0, 1]) + df = DataFrame({"A": data}) + expected = Series(data, name="A") + result = df["A"] + tm.assert_series_equal(result, expected) + + # Also check iloc and loc while we're here + result = df.iloc[:, 0] + tm.assert_series_equal(result, expected) + + result = df.loc[:, "A"] + tm.assert_series_equal(result, expected) + + def test_getitem_string_columns(self): + # GH#46185 + df = DataFrame([[1, 2]], columns=Index(["A", "B"], dtype="string")) + result = df.A + expected = df["A"] + tm.assert_series_equal(result, expected) + + +class TestGetitemListLike: + def test_getitem_list_missing_key(self): + # GH#13822, incorrect error string with non-unique columns when missing + # column is accessed + df = DataFrame({"x": [1.0], "y": [2.0], "z": [3.0]}) + df.columns = ["x", "x", "z"] + + # Check that we get the correct value in the KeyError + with pytest.raises(KeyError, match=r"\['y'\] not in index"): + df[["x", "y", "z"]] + + def test_getitem_list_duplicates(self): + # GH#1943 + df = DataFrame( + np.random.default_rng(2).standard_normal((4, 4)), columns=list("AABC") + ) + df.columns.name = "foo" + + result = df[["B", "C"]] + assert result.columns.name == "foo" + + expected = df.iloc[:, 2:] + tm.assert_frame_equal(result, expected) + + def test_getitem_dupe_cols(self): + df = DataFrame([[1, 2, 3], [4, 5, 6]], columns=["a", "a", "b"]) + msg = "\"None of [Index(['baf'], dtype=" + with pytest.raises(KeyError, match=re.escape(msg)): + df[["baf"]] + + @pytest.mark.parametrize( + "idx_type", + [ + list, + iter, + Index, + set, + lambda keys: dict(zip(keys, range(len(keys)))), + lambda keys: dict(zip(keys, range(len(keys)))).keys(), + ], + ids=["list", "iter", "Index", "set", "dict", "dict_keys"], + ) + @pytest.mark.parametrize("levels", [1, 2]) + def test_getitem_listlike(self, idx_type, levels, float_frame): + # GH#21294 + + if levels == 1: + frame, missing = float_frame, "food" + else: + # MultiIndex columns + frame = DataFrame( + np.random.default_rng(2).standard_normal((8, 3)), + columns=Index( + [("foo", "bar"), ("baz", "qux"), ("peek", "aboo")], + name=("sth", "sth2"), + ), + ) + missing = ("good", "food") + + keys = [frame.columns[1], frame.columns[0]] + idx = idx_type(keys) + idx_check = list(idx_type(keys)) + + if isinstance(idx, (set, dict)): + with pytest.raises(TypeError, match="as an indexer is not supported"): + frame[idx] + + return + else: + result = frame[idx] + + expected = frame.loc[:, idx_check] + expected.columns.names = frame.columns.names + + tm.assert_frame_equal(result, expected) + + idx = idx_type(keys + [missing]) + with pytest.raises(KeyError, match="not in index"): + frame[idx] + + def test_getitem_iloc_generator(self): + # GH#39614 + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + indexer = (x for x in [1, 2]) + result = df.iloc[indexer] + expected = DataFrame({"a": [2, 3], "b": [5, 6]}, index=[1, 2]) + tm.assert_frame_equal(result, expected) + + def test_getitem_iloc_two_dimensional_generator(self): + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + indexer = (x for x in [1, 2]) + result = df.iloc[indexer, 1] + expected = Series([5, 6], name="b", index=[1, 2]) + tm.assert_series_equal(result, expected) + + def test_getitem_iloc_dateoffset_days(self): + # GH 46671 + df = DataFrame( + list(range(10)), + index=date_range("01-01-2022", periods=10, freq=DateOffset(days=1)), + ) + result = df.loc["2022-01-01":"2022-01-03"] + expected = DataFrame( + [0, 1, 2], + index=DatetimeIndex( + ["2022-01-01", "2022-01-02", "2022-01-03"], + dtype="datetime64[ns]", + freq=DateOffset(days=1), + ), + ) + tm.assert_frame_equal(result, expected) + + df = DataFrame( + list(range(10)), + index=date_range( + "01-01-2022", periods=10, freq=DateOffset(days=1, hours=2) + ), + ) + result = df.loc["2022-01-01":"2022-01-03"] + expected = DataFrame( + [0, 1, 2], + index=DatetimeIndex( + ["2022-01-01 00:00:00", "2022-01-02 02:00:00", "2022-01-03 04:00:00"], + dtype="datetime64[ns]", + freq=DateOffset(days=1, hours=2), + ), + ) + tm.assert_frame_equal(result, expected) + + df = DataFrame( + list(range(10)), + index=date_range("01-01-2022", periods=10, freq=DateOffset(minutes=3)), + ) + result = df.loc["2022-01-01":"2022-01-03"] + tm.assert_frame_equal(result, df) + + +class TestGetitemCallable: + def test_getitem_callable(self, float_frame): + # GH#12533 + result = float_frame[lambda x: "A"] + expected = float_frame.loc[:, "A"] + tm.assert_series_equal(result, expected) + + result = float_frame[lambda x: ["A", "B"]] + expected = float_frame.loc[:, ["A", "B"]] + tm.assert_frame_equal(result, float_frame.loc[:, ["A", "B"]]) + + df = float_frame[:3] + result = df[lambda x: [True, False, True]] + expected = float_frame.iloc[[0, 2], :] + tm.assert_frame_equal(result, expected) + + def test_loc_multiindex_columns_one_level(self): + # GH#29749 + df = DataFrame([[1, 2]], columns=[["a", "b"]]) + expected = DataFrame([1], columns=[["a"]]) + + result = df["a"] + tm.assert_frame_equal(result, expected) + + result = df.loc[:, "a"] + tm.assert_frame_equal(result, expected) + + +class TestGetitemBooleanMask: + def test_getitem_bool_mask_categorical_index(self): + df3 = DataFrame( + { + "A": np.arange(6, dtype="int64"), + }, + index=CategoricalIndex( + [1, 1, 2, 1, 3, 2], + dtype=CategoricalDtype([3, 2, 1], ordered=True), + name="B", + ), + ) + df4 = DataFrame( + { + "A": np.arange(6, dtype="int64"), + }, + index=CategoricalIndex( + [1, 1, 2, 1, 3, 2], + dtype=CategoricalDtype([3, 2, 1], ordered=False), + name="B", + ), + ) + + result = df3[df3.index == "a"] + expected = df3.iloc[[]] + tm.assert_frame_equal(result, expected) + + result = df4[df4.index == "a"] + expected = df4.iloc[[]] + tm.assert_frame_equal(result, expected) + + result = df3[df3.index == 1] + expected = df3.iloc[[0, 1, 3]] + tm.assert_frame_equal(result, expected) + + result = df4[df4.index == 1] + expected = df4.iloc[[0, 1, 3]] + tm.assert_frame_equal(result, expected) + + # since we have an ordered categorical + + # CategoricalIndex([1, 1, 2, 1, 3, 2], + # categories=[3, 2, 1], + # ordered=True, + # name='B') + result = df3[df3.index < 2] + expected = df3.iloc[[4]] + tm.assert_frame_equal(result, expected) + + result = df3[df3.index > 1] + expected = df3.iloc[[]] + tm.assert_frame_equal(result, expected) + + # unordered + # cannot be compared + + # CategoricalIndex([1, 1, 2, 1, 3, 2], + # categories=[3, 2, 1], + # ordered=False, + # name='B') + msg = "Unordered Categoricals can only compare equality or not" + with pytest.raises(TypeError, match=msg): + df4[df4.index < 2] + with pytest.raises(TypeError, match=msg): + df4[df4.index > 1] + + @pytest.mark.parametrize( + "data1,data2,expected_data", + ( + ( + [[1, 2], [3, 4]], + [[0.5, 6], [7, 8]], + [[np.nan, 3.0], [np.nan, 4.0], [np.nan, 7.0], [6.0, 8.0]], + ), + ( + [[1, 2], [3, 4]], + [[5, 6], [7, 8]], + [[np.nan, 3.0], [np.nan, 4.0], [5, 7], [6, 8]], + ), + ), + ) + def test_getitem_bool_mask_duplicate_columns_mixed_dtypes( + self, + data1, + data2, + expected_data, + ): + # GH#31954 + + df1 = DataFrame(np.array(data1)) + df2 = DataFrame(np.array(data2)) + df = concat([df1, df2], axis=1) + + result = df[df > 2] + + exdict = {i: np.array(col) for i, col in enumerate(expected_data)} + expected = DataFrame(exdict).rename(columns={2: 0, 3: 1}) + tm.assert_frame_equal(result, expected) + + @pytest.fixture + def df_dup_cols(self): + dups = ["A", "A", "C", "D"] + df = DataFrame(np.arange(12).reshape(3, 4), columns=dups, dtype="float64") + return df + + def test_getitem_boolean_frame_unaligned_with_duplicate_columns(self, df_dup_cols): + # `df.A > 6` is a DataFrame with a different shape from df + + # boolean with the duplicate raises + df = df_dup_cols + msg = "cannot reindex on an axis with duplicate labels" + with pytest.raises(ValueError, match=msg): + df[df.A > 6] + + def test_getitem_boolean_series_with_duplicate_columns(self, df_dup_cols): + # boolean indexing + # GH#4879 + df = DataFrame( + np.arange(12).reshape(3, 4), columns=["A", "B", "C", "D"], dtype="float64" + ) + expected = df[df.C > 6] + expected.columns = df_dup_cols.columns + + df = df_dup_cols + result = df[df.C > 6] + + tm.assert_frame_equal(result, expected) + + def test_getitem_boolean_frame_with_duplicate_columns(self, df_dup_cols): + # where + df = DataFrame( + np.arange(12).reshape(3, 4), columns=["A", "B", "C", "D"], dtype="float64" + ) + # `df > 6` is a DataFrame with the same shape+alignment as df + expected = df[df > 6] + expected.columns = df_dup_cols.columns + + df = df_dup_cols + result = df[df > 6] + + tm.assert_frame_equal(result, expected) + + def test_getitem_empty_frame_with_boolean(self): + # Test for issue GH#11859 + + df = DataFrame() + df2 = df[df > 0] + tm.assert_frame_equal(df, df2) + + def test_getitem_returns_view_when_column_is_unique_in_df( + self, using_copy_on_write, warn_copy_on_write + ): + # GH#45316 + df = DataFrame([[1, 2, 3], [4, 5, 6]], columns=["a", "a", "b"]) + df_orig = df.copy() + view = df["b"] + with tm.assert_cow_warning(warn_copy_on_write): + view.loc[:] = 100 + if using_copy_on_write: + expected = df_orig + else: + expected = DataFrame([[1, 2, 100], [4, 5, 100]], columns=["a", "a", "b"]) + tm.assert_frame_equal(df, expected) + + def test_getitem_frozenset_unique_in_column(self): + # GH#41062 + df = DataFrame([[1, 2, 3, 4]], columns=[frozenset(["KEY"]), "B", "C", "C"]) + result = df[frozenset(["KEY"])] + expected = Series([1], name=frozenset(["KEY"])) + tm.assert_series_equal(result, expected) + + +class TestGetitemSlice: + def test_getitem_slice_float64(self, frame_or_series): + values = np.arange(10.0, 50.0, 2) + index = Index(values) + + start, end = values[[5, 15]] + + data = np.random.default_rng(2).standard_normal((20, 3)) + if frame_or_series is not DataFrame: + data = data[:, 0] + + obj = frame_or_series(data, index=index) + + result = obj[start:end] + expected = obj.iloc[5:16] + tm.assert_equal(result, expected) + + result = obj.loc[start:end] + tm.assert_equal(result, expected) + + def test_getitem_datetime_slice(self): + # GH#43223 + df = DataFrame( + {"a": 0}, + index=DatetimeIndex( + [ + "11.01.2011 22:00", + "11.01.2011 23:00", + "12.01.2011 00:00", + "2011-01-13 00:00", + ] + ), + ) + with pytest.raises( + KeyError, match="Value based partial slicing on non-monotonic" + ): + df["2011-01-01":"2011-11-01"] + + def test_getitem_slice_same_dim_only_one_axis(self): + # GH#54622 + df = DataFrame(np.random.default_rng(2).standard_normal((10, 8))) + result = df.iloc[(slice(None, None, 2),)] + assert result.shape == (5, 8) + expected = df.iloc[slice(None, None, 2), slice(None)] + tm.assert_frame_equal(result, expected) + + +class TestGetitemDeprecatedIndexers: + @pytest.mark.parametrize("key", [{"a", "b"}, {"a": "a"}]) + def test_getitem_dict_and_set_deprecated(self, key): + # GH#42825 enforced in 2.0 + df = DataFrame( + [[1, 2], [3, 4]], columns=MultiIndex.from_tuples([("a", 1), ("b", 2)]) + ) + with pytest.raises(TypeError, match="as an indexer is not supported"): + df[key] diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_indexing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_indexing.py new file mode 100644 index 0000000000000000000000000000000000000000..1388f41e6f7ee798de4950e9f36cc05387164866 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_indexing.py @@ -0,0 +1,2033 @@ +from collections import namedtuple +from datetime import ( + datetime, + timedelta, +) +from decimal import Decimal +import re + +import numpy as np +import pytest + +from pandas._config import using_string_dtype + +from pandas._libs import iNaT +from pandas.errors import ( + InvalidIndexError, + PerformanceWarning, + SettingWithCopyError, +) +import pandas.util._test_decorators as td + +from pandas.core.dtypes.common import is_integer + +import pandas as pd +from pandas import ( + Categorical, + DataFrame, + DatetimeIndex, + Index, + MultiIndex, + Series, + Timestamp, + date_range, + isna, + notna, + to_datetime, +) +import pandas._testing as tm + +# We pass through a TypeError raised by numpy +_slice_msg = "slice indices must be integers or None or have an __index__ method" + + +class TestDataFrameIndexing: + def test_getitem(self, float_frame): + # Slicing + sl = float_frame[:20] + assert len(sl.index) == 20 + + # Column access + for _, series in sl.items(): + assert len(series.index) == 20 + tm.assert_index_equal(series.index, sl.index) + + for key, _ in float_frame._series.items(): + assert float_frame[key] is not None + + assert "random" not in float_frame + with pytest.raises(KeyError, match="random"): + float_frame["random"] + + def test_getitem_numeric_should_not_fallback_to_positional(self, any_numeric_dtype): + # GH51053 + dtype = any_numeric_dtype + idx = Index([1, 0, 1], dtype=dtype) + df = DataFrame([[1, 2, 3], [4, 5, 6]], columns=idx) + result = df[1] + expected = DataFrame([[1, 3], [4, 6]], columns=Index([1, 1], dtype=dtype)) + tm.assert_frame_equal(result, expected, check_exact=True) + + def test_getitem2(self, float_frame): + df = float_frame.copy() + df["$10"] = np.random.default_rng(2).standard_normal(len(df)) + + ad = np.random.default_rng(2).standard_normal(len(df)) + df["@awesome_domain"] = ad + + with pytest.raises(KeyError, match=re.escape("'df[\"$10\"]'")): + df.__getitem__('df["$10"]') + + res = df["@awesome_domain"] + tm.assert_numpy_array_equal(ad, res.values) + + def test_setitem_numeric_should_not_fallback_to_positional(self, any_numeric_dtype): + # GH51053 + dtype = any_numeric_dtype + idx = Index([1, 0, 1], dtype=dtype) + df = DataFrame([[1, 2, 3], [4, 5, 6]], columns=idx) + df[1] = 10 + expected = DataFrame([[10, 2, 10], [10, 5, 10]], columns=idx) + tm.assert_frame_equal(df, expected, check_exact=True) + + def test_setitem_list(self, float_frame): + float_frame["E"] = "foo" + data = float_frame[["A", "B"]] + float_frame[["B", "A"]] = data + + tm.assert_series_equal(float_frame["B"], data["A"], check_names=False) + tm.assert_series_equal(float_frame["A"], data["B"], check_names=False) + + msg = "Columns must be same length as key" + with pytest.raises(ValueError, match=msg): + data[["A"]] = float_frame[["A", "B"]] + newcolumndata = range(len(data.index) - 1) + msg = ( + rf"Length of values \({len(newcolumndata)}\) " + rf"does not match length of index \({len(data)}\)" + ) + with pytest.raises(ValueError, match=msg): + data["A"] = newcolumndata + + def test_setitem_list2(self): + df = DataFrame(0, index=range(3), columns=["tt1", "tt2"], dtype=int) + df.loc[1, ["tt1", "tt2"]] = [1, 2] + + result = df.loc[df.index[1], ["tt1", "tt2"]] + expected = Series([1, 2], df.columns, dtype=int, name=1) + tm.assert_series_equal(result, expected) + + df["tt1"] = df["tt2"] = "0" + df.loc[df.index[1], ["tt1", "tt2"]] = ["1", "2"] + result = df.loc[df.index[1], ["tt1", "tt2"]] + expected = Series(["1", "2"], df.columns, name=1) + tm.assert_series_equal(result, expected) + + def test_getitem_boolean(self, mixed_float_frame, mixed_int_frame, datetime_frame): + # boolean indexing + d = datetime_frame.index[10] + indexer = datetime_frame.index > d + indexer_obj = indexer.astype(object) + + subindex = datetime_frame.index[indexer] + subframe = datetime_frame[indexer] + + tm.assert_index_equal(subindex, subframe.index) + with pytest.raises(ValueError, match="Item wrong length"): + datetime_frame[indexer[:-1]] + + subframe_obj = datetime_frame[indexer_obj] + tm.assert_frame_equal(subframe_obj, subframe) + + with pytest.raises(ValueError, match="Boolean array expected"): + datetime_frame[datetime_frame] + + # test that Series work + indexer_obj = Series(indexer_obj, datetime_frame.index) + + subframe_obj = datetime_frame[indexer_obj] + tm.assert_frame_equal(subframe_obj, subframe) + + # test that Series indexers reindex + # we are producing a warning that since the passed boolean + # key is not the same as the given index, we will reindex + # not sure this is really necessary + with tm.assert_produces_warning(UserWarning): + indexer_obj = indexer_obj.reindex(datetime_frame.index[::-1]) + subframe_obj = datetime_frame[indexer_obj] + tm.assert_frame_equal(subframe_obj, subframe) + + # test df[df > 0] + for df in [ + datetime_frame, + mixed_float_frame, + mixed_int_frame, + ]: + data = df._get_numeric_data() + bif = df[df > 0] + bifw = DataFrame( + {c: np.where(data[c] > 0, data[c], np.nan) for c in data.columns}, + index=data.index, + columns=data.columns, + ) + + # add back other columns to compare + for c in df.columns: + if c not in bifw: + bifw[c] = df[c] + bifw = bifw.reindex(columns=df.columns) + + tm.assert_frame_equal(bif, bifw, check_dtype=False) + for c in df.columns: + if bif[c].dtype != bifw[c].dtype: + assert bif[c].dtype == df[c].dtype + + def test_getitem_boolean_casting(self, datetime_frame): + # don't upcast if we don't need to + df = datetime_frame.copy() + df["E"] = 1 + df["E"] = df["E"].astype("int32") + df["E1"] = df["E"].copy() + df["F"] = 1 + df["F"] = df["F"].astype("int64") + df["F1"] = df["F"].copy() + + casted = df[df > 0] + result = casted.dtypes + expected = Series( + [np.dtype("float64")] * 4 + + [np.dtype("int32")] * 2 + + [np.dtype("int64")] * 2, + index=["A", "B", "C", "D", "E", "E1", "F", "F1"], + ) + tm.assert_series_equal(result, expected) + + # int block splitting + df.loc[df.index[1:3], ["E1", "F1"]] = 0 + casted = df[df > 0] + result = casted.dtypes + expected = Series( + [np.dtype("float64")] * 4 + + [np.dtype("int32")] + + [np.dtype("float64")] + + [np.dtype("int64")] + + [np.dtype("float64")], + index=["A", "B", "C", "D", "E", "E1", "F", "F1"], + ) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize( + "lst", [[True, False, True], [True, True, True], [False, False, False]] + ) + def test_getitem_boolean_list(self, lst): + df = DataFrame(np.arange(12).reshape(3, 4)) + result = df[lst] + expected = df.loc[df.index[lst]] + tm.assert_frame_equal(result, expected) + + def test_getitem_boolean_iadd(self): + arr = np.random.default_rng(2).standard_normal((5, 5)) + + df = DataFrame(arr.copy(), columns=["A", "B", "C", "D", "E"]) + + df[df < 0] += 1 + arr[arr < 0] += 1 + + tm.assert_almost_equal(df.values, arr) + + def test_boolean_index_empty_corner(self): + # #2096 + blah = DataFrame(np.empty([0, 1]), columns=["A"], index=DatetimeIndex([])) + + # both of these should succeed trivially + k = np.array([], bool) + + blah[k] + blah[k] = 0 + + def test_getitem_ix_mixed_integer(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((4, 3)), + index=[1, 10, "C", "E"], + columns=[1, 2, 3], + ) + + result = df.iloc[:-1] + expected = df.loc[df.index[:-1]] + tm.assert_frame_equal(result, expected) + + result = df.loc[[1, 10]] + expected = df.loc[Index([1, 10])] + tm.assert_frame_equal(result, expected) + + def test_getitem_ix_mixed_integer2(self): + # 11320 + df = DataFrame( + { + "rna": (1.5, 2.2, 3.2, 4.5), + -1000: [11, 21, 36, 40], + 0: [10, 22, 43, 34], + 1000: [0, 10, 20, 30], + }, + columns=["rna", -1000, 0, 1000], + ) + result = df[[1000]] + expected = df.iloc[:, [3]] + tm.assert_frame_equal(result, expected) + result = df[[-1000]] + expected = df.iloc[:, [1]] + tm.assert_frame_equal(result, expected) + + def test_getattr(self, float_frame): + tm.assert_series_equal(float_frame.A, float_frame["A"]) + msg = "'DataFrame' object has no attribute 'NONEXISTENT_NAME'" + with pytest.raises(AttributeError, match=msg): + float_frame.NONEXISTENT_NAME + + def test_setattr_column(self): + df = DataFrame({"foobar": 1}, index=range(10)) + + df.foobar = 5 + assert (df.foobar == 5).all() + + def test_setitem( + self, float_frame, using_copy_on_write, warn_copy_on_write, using_infer_string + ): + # not sure what else to do here + series = float_frame["A"][::2] + float_frame["col5"] = series + assert "col5" in float_frame + + assert len(series) == 15 + assert len(float_frame) == 30 + + exp = np.ravel(np.column_stack((series.values, [np.nan] * 15))) + exp = Series(exp, index=float_frame.index, name="col5") + tm.assert_series_equal(float_frame["col5"], exp) + + series = float_frame["A"] + float_frame["col6"] = series + tm.assert_series_equal(series, float_frame["col6"], check_names=False) + + # set ndarray + arr = np.random.default_rng(2).standard_normal(len(float_frame)) + float_frame["col9"] = arr + assert (float_frame["col9"] == arr).all() + + float_frame["col7"] = 5 + assert (float_frame["col7"] == 5).all() + + float_frame["col0"] = 3.14 + assert (float_frame["col0"] == 3.14).all() + + float_frame["col8"] = "foo" + assert (float_frame["col8"] == "foo").all() + + # this is partially a view (e.g. some blocks are view) + # so raise/warn + smaller = float_frame[:2] + + msg = r"\nA value is trying to be set on a copy of a slice from a DataFrame" + if using_copy_on_write or warn_copy_on_write: + # With CoW, adding a new column doesn't raise a warning + smaller["col10"] = ["1", "2"] + else: + with pytest.raises(SettingWithCopyError, match=msg): + smaller["col10"] = ["1", "2"] + + if using_infer_string: + assert smaller["col10"].dtype == "str" + else: + assert smaller["col10"].dtype == np.object_ + assert (smaller["col10"] == ["1", "2"]).all() + + def test_setitem2(self): + # dtype changing GH4204 + df = DataFrame([[0, 0]]) + df.iloc[0] = np.nan + expected = DataFrame([[np.nan, np.nan]]) + tm.assert_frame_equal(df, expected) + + df = DataFrame([[0, 0]]) + df.loc[0] = np.nan + tm.assert_frame_equal(df, expected) + + def test_setitem_boolean(self, float_frame): + df = float_frame.copy() + values = float_frame.values.copy() + + df[df["A"] > 0] = 4 + values[values[:, 0] > 0] = 4 + tm.assert_almost_equal(df.values, values) + + # test that column reindexing works + series = df["A"] == 4 + series = series.reindex(df.index[::-1]) + df[series] = 1 + values[values[:, 0] == 4] = 1 + tm.assert_almost_equal(df.values, values) + + df[df > 0] = 5 + values[values > 0] = 5 + tm.assert_almost_equal(df.values, values) + + df[df == 5] = 0 + values[values == 5] = 0 + tm.assert_almost_equal(df.values, values) + + # a df that needs alignment first + df[df[:-1] < 0] = 2 + np.putmask(values[:-1], values[:-1] < 0, 2) + tm.assert_almost_equal(df.values, values) + + # indexed with same shape but rows-reversed df + df[df[::-1] == 2] = 3 + values[values == 2] = 3 + tm.assert_almost_equal(df.values, values) + + msg = "Must pass DataFrame or 2-d ndarray with boolean values only" + with pytest.raises(TypeError, match=msg): + df[df * 0] = 2 + + # index with DataFrame + df_orig = df.copy() + mask = df > np.abs(df) + df[df > np.abs(df)] = np.nan + values = df_orig.values.copy() + values[mask.values] = np.nan + expected = DataFrame(values, index=df_orig.index, columns=df_orig.columns) + tm.assert_frame_equal(df, expected) + + # set from DataFrame + df[df > np.abs(df)] = df * 2 + np.putmask(values, mask.values, df.values * 2) + expected = DataFrame(values, index=df_orig.index, columns=df_orig.columns) + tm.assert_frame_equal(df, expected) + + def test_setitem_cast(self, float_frame): + float_frame["D"] = float_frame["D"].astype("i8") + assert float_frame["D"].dtype == np.int64 + + # #669, should not cast? + # this is now set to int64, which means a replacement of the column to + # the value dtype (and nothing to do with the existing dtype) + float_frame["B"] = 0 + assert float_frame["B"].dtype == np.int64 + + # cast if pass array of course + float_frame["B"] = np.arange(len(float_frame)) + assert issubclass(float_frame["B"].dtype.type, np.integer) + + float_frame["foo"] = "bar" + float_frame["foo"] = 0 + assert float_frame["foo"].dtype == np.int64 + + float_frame["foo"] = "bar" + float_frame["foo"] = 2.5 + assert float_frame["foo"].dtype == np.float64 + + float_frame["something"] = 0 + assert float_frame["something"].dtype == np.int64 + float_frame["something"] = 2 + assert float_frame["something"].dtype == np.int64 + float_frame["something"] = 2.5 + assert float_frame["something"].dtype == np.float64 + + def test_setitem_corner(self, float_frame, using_infer_string): + # corner case + df = DataFrame({"B": [1.0, 2.0, 3.0], "C": ["a", "b", "c"]}, index=np.arange(3)) + del df["B"] + df["B"] = [1.0, 2.0, 3.0] + assert "B" in df + assert len(df.columns) == 2 + + df["A"] = "beginning" + df["E"] = "foo" + df["D"] = "bar" + df[datetime.now()] = "date" + df[datetime.now()] = 5.0 + + # what to do when empty frame with index + dm = DataFrame(index=float_frame.index) + dm["A"] = "foo" + dm["B"] = "bar" + assert len(dm.columns) == 2 + assert dm.values.dtype == np.object_ + + # upcast + dm["C"] = 1 + assert dm["C"].dtype == np.int64 + + dm["E"] = 1.0 + assert dm["E"].dtype == np.float64 + + # set existing column + dm["A"] = "bar" + assert "bar" == dm["A"].iloc[0] + + dm = DataFrame(index=np.arange(3)) + dm["A"] = 1 + dm["foo"] = "bar" + del dm["foo"] + dm["foo"] = "bar" + if using_infer_string: + assert dm["foo"].dtype == "str" + else: + assert dm["foo"].dtype == np.object_ + + dm["coercible"] = ["1", "2", "3"] + if using_infer_string: + assert dm["coercible"].dtype == "str" + else: + assert dm["coercible"].dtype == np.object_ + + def test_setitem_corner2(self): + data = { + "title": ["foobar", "bar", "foobar"] + ["foobar"] * 17, + "cruft": np.random.default_rng(2).random(20), + } + + df = DataFrame(data) + ix = df[df["title"] == "bar"].index + + df.loc[ix, ["title"]] = "foobar" + df.loc[ix, ["cruft"]] = 0 + + assert df.loc[1, "title"] == "foobar" + assert df.loc[1, "cruft"] == 0 + + def test_setitem_ambig(self, using_infer_string): + # Difficulties with mixed-type data + # Created as float type + dm = DataFrame(index=range(3), columns=range(3)) + + coercable_series = Series([Decimal(1) for _ in range(3)], index=range(3)) + uncoercable_series = Series(["foo", "bzr", "baz"], index=range(3)) + + dm[0] = np.ones(3) + assert len(dm.columns) == 3 + + dm[1] = coercable_series + assert len(dm.columns) == 3 + + dm[2] = uncoercable_series + assert len(dm.columns) == 3 + if using_infer_string: + assert dm[2].dtype == "str" + else: + assert dm[2].dtype == np.object_ + + def test_setitem_None(self, float_frame): + # GH #766 + float_frame[None] = float_frame["A"] + tm.assert_series_equal( + float_frame.iloc[:, -1], float_frame["A"], check_names=False + ) + tm.assert_series_equal( + float_frame.loc[:, None], float_frame["A"], check_names=False + ) + tm.assert_series_equal(float_frame[None], float_frame["A"], check_names=False) + + def test_loc_setitem_boolean_mask_allfalse(self): + # GH 9596 + df = DataFrame( + {"a": ["1", "2", "3"], "b": ["11", "22", "33"], "c": ["111", "222", "333"]} + ) + + result = df.copy() + result.loc[result.b.isna(), "a"] = result.a.copy() + tm.assert_frame_equal(result, df) + + def test_getitem_fancy_slice_integers_step(self): + df = DataFrame(np.random.default_rng(2).standard_normal((10, 5))) + + # this is OK + df.iloc[:8:2] + df.iloc[:8:2] = np.nan + assert isna(df.iloc[:8:2]).values.all() + + def test_getitem_setitem_integer_slice_keyerrors(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 5)), index=range(0, 20, 2) + ) + + # this is OK + cp = df.copy() + cp.iloc[4:10] = 0 + assert (cp.iloc[4:10] == 0).values.all() + + # so is this + cp = df.copy() + cp.iloc[3:11] = 0 + assert (cp.iloc[3:11] == 0).values.all() + + result = df.iloc[2:6] + result2 = df.loc[3:11] + expected = df.reindex([4, 6, 8, 10]) + + tm.assert_frame_equal(result, expected) + tm.assert_frame_equal(result2, expected) + + # non-monotonic, raise KeyError + df2 = df.iloc[list(range(5)) + list(range(5, 10))[::-1]] + with pytest.raises(KeyError, match=r"^3$"): + df2.loc[3:11] + with pytest.raises(KeyError, match=r"^3$"): + df2.loc[3:11] = 0 + + @td.skip_array_manager_invalid_test # already covered in test_iloc_col_slice_view + def test_fancy_getitem_slice_mixed( + self, float_frame, float_string_frame, using_copy_on_write, warn_copy_on_write + ): + sliced = float_string_frame.iloc[:, -3:] + assert sliced["D"].dtype == np.float64 + + # get view with single block + # setting it triggers setting with copy + original = float_frame.copy() + sliced = float_frame.iloc[:, -3:] + + assert np.shares_memory(sliced["C"]._values, float_frame["C"]._values) + + with tm.assert_cow_warning(warn_copy_on_write): + sliced.loc[:, "C"] = 4.0 + if not using_copy_on_write: + assert (float_frame["C"] == 4).all() + + # with the enforcement of GH#45333 in 2.0, this remains a view + np.shares_memory(sliced["C"]._values, float_frame["C"]._values) + else: + tm.assert_frame_equal(float_frame, original) + + def test_getitem_setitem_non_ix_labels(self): + df = DataFrame(range(20), index=date_range("2020-01-01", periods=20)) + + start, end = df.index[[5, 10]] + + result = df.loc[start:end] + result2 = df[start:end] + expected = df[5:11] + tm.assert_frame_equal(result, expected) + tm.assert_frame_equal(result2, expected) + + result = df.copy() + result.loc[start:end] = 0 + result2 = df.copy() + result2[start:end] = 0 + expected = df.copy() + expected[5:11] = 0 + tm.assert_frame_equal(result, expected) + tm.assert_frame_equal(result2, expected) + + def test_ix_multi_take(self): + df = DataFrame(np.random.default_rng(2).standard_normal((3, 2))) + rs = df.loc[df.index == 0, :] + xp = df.reindex([0]) + tm.assert_frame_equal(rs, xp) + + # GH#1321 + df = DataFrame(np.random.default_rng(2).standard_normal((3, 2))) + rs = df.loc[df.index == 0, df.columns == 1] + xp = df.reindex(index=[0], columns=[1]) + tm.assert_frame_equal(rs, xp) + + def test_getitem_fancy_scalar(self, float_frame): + f = float_frame + ix = f.loc + + # individual value + for col in f.columns: + ts = f[col] + for idx in f.index[::5]: + assert ix[idx, col] == ts[idx] + + @td.skip_array_manager_invalid_test # TODO(ArrayManager) rewrite not using .values + def test_setitem_fancy_scalar(self, float_frame): + f = float_frame + expected = float_frame.copy() + ix = f.loc + + # individual value + for j, col in enumerate(f.columns): + f[col] + for idx in f.index[::5]: + i = f.index.get_loc(idx) + val = np.random.default_rng(2).standard_normal() + expected.iloc[i, j] = val + + ix[idx, col] = val + tm.assert_frame_equal(f, expected) + + def test_getitem_fancy_boolean(self, float_frame): + f = float_frame + ix = f.loc + + expected = f.reindex(columns=["B", "D"]) + result = ix[:, [False, True, False, True]] + tm.assert_frame_equal(result, expected) + + expected = f.reindex(index=f.index[5:10], columns=["B", "D"]) + result = ix[f.index[5:10], [False, True, False, True]] + tm.assert_frame_equal(result, expected) + + boolvec = f.index > f.index[7] + expected = f.reindex(index=f.index[boolvec]) + result = ix[boolvec] + tm.assert_frame_equal(result, expected) + result = ix[boolvec, :] + tm.assert_frame_equal(result, expected) + + result = ix[boolvec, f.columns[2:]] + expected = f.reindex(index=f.index[boolvec], columns=["C", "D"]) + tm.assert_frame_equal(result, expected) + + @td.skip_array_manager_invalid_test # TODO(ArrayManager) rewrite not using .values + def test_setitem_fancy_boolean(self, float_frame): + # from 2d, set with booleans + frame = float_frame.copy() + expected = float_frame.copy() + values = expected.values.copy() + + mask = frame["A"] > 0 + frame.loc[mask] = 0.0 + values[mask.values] = 0.0 + expected = DataFrame(values, index=expected.index, columns=expected.columns) + tm.assert_frame_equal(frame, expected) + + frame = float_frame.copy() + expected = float_frame.copy() + values = expected.values.copy() + frame.loc[mask, ["A", "B"]] = 0.0 + values[mask.values, :2] = 0.0 + expected = DataFrame(values, index=expected.index, columns=expected.columns) + tm.assert_frame_equal(frame, expected) + + def test_getitem_fancy_ints(self, float_frame): + result = float_frame.iloc[[1, 4, 7]] + expected = float_frame.loc[float_frame.index[[1, 4, 7]]] + tm.assert_frame_equal(result, expected) + + result = float_frame.iloc[:, [2, 0, 1]] + expected = float_frame.loc[:, float_frame.columns[[2, 0, 1]]] + tm.assert_frame_equal(result, expected) + + def test_getitem_setitem_boolean_misaligned(self, float_frame): + # boolean index misaligned labels + mask = float_frame["A"][::-1] > 1 + + result = float_frame.loc[mask] + expected = float_frame.loc[mask[::-1]] + tm.assert_frame_equal(result, expected) + + cp = float_frame.copy() + expected = float_frame.copy() + cp.loc[mask] = 0 + expected.loc[mask] = 0 + tm.assert_frame_equal(cp, expected) + + def test_getitem_setitem_boolean_multi(self): + df = DataFrame(np.random.default_rng(2).standard_normal((3, 2))) + + # get + k1 = np.array([True, False, True]) + k2 = np.array([False, True]) + result = df.loc[k1, k2] + expected = df.loc[[0, 2], [1]] + tm.assert_frame_equal(result, expected) + + expected = df.copy() + df.loc[np.array([True, False, True]), np.array([False, True])] = 5 + expected.loc[[0, 2], [1]] = 5 + tm.assert_frame_equal(df, expected) + + def test_getitem_setitem_float_labels(self, using_array_manager): + index = Index([1.5, 2, 3, 4, 5]) + df = DataFrame(np.random.default_rng(2).standard_normal((5, 5)), index=index) + + result = df.loc[1.5:4] + expected = df.reindex([1.5, 2, 3, 4]) + tm.assert_frame_equal(result, expected) + assert len(result) == 4 + + result = df.loc[4:5] + expected = df.reindex([4, 5]) # reindex with int + tm.assert_frame_equal(result, expected, check_index_type=False) + assert len(result) == 2 + + result = df.loc[4:5] + expected = df.reindex([4.0, 5.0]) # reindex with float + tm.assert_frame_equal(result, expected) + assert len(result) == 2 + + # loc_float changes this to work properly + result = df.loc[1:2] + expected = df.iloc[0:2] + tm.assert_frame_equal(result, expected) + + expected = df.iloc[0:2] + msg = r"The behavior of obj\[i:j\] with a float-dtype index" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df[1:2] + tm.assert_frame_equal(result, expected) + + # #2727 + index = Index([1.0, 2.5, 3.5, 4.5, 5.0]) + df = DataFrame(np.random.default_rng(2).standard_normal((5, 5)), index=index) + + # positional slicing only via iloc! + msg = ( + "cannot do positional indexing on Index with " + r"these indexers \[1.0\] of type float" + ) + with pytest.raises(TypeError, match=msg): + df.iloc[1.0:5] + + result = df.iloc[4:5] + expected = df.reindex([5.0]) + tm.assert_frame_equal(result, expected) + assert len(result) == 1 + + cp = df.copy() + + with pytest.raises(TypeError, match=_slice_msg): + cp.iloc[1.0:5] = 0 + + with pytest.raises(TypeError, match=msg): + result = cp.iloc[1.0:5] == 0 + + assert result.values.all() + assert (cp.iloc[0:1] == df.iloc[0:1]).values.all() + + cp = df.copy() + cp.iloc[4:5] = 0 + assert (cp.iloc[4:5] == 0).values.all() + assert (cp.iloc[0:4] == df.iloc[0:4]).values.all() + + # float slicing + result = df.loc[1.0:5] + expected = df + tm.assert_frame_equal(result, expected) + assert len(result) == 5 + + result = df.loc[1.1:5] + expected = df.reindex([2.5, 3.5, 4.5, 5.0]) + tm.assert_frame_equal(result, expected) + assert len(result) == 4 + + result = df.loc[4.51:5] + expected = df.reindex([5.0]) + tm.assert_frame_equal(result, expected) + assert len(result) == 1 + + result = df.loc[1.0:5.0] + expected = df.reindex([1.0, 2.5, 3.5, 4.5, 5.0]) + tm.assert_frame_equal(result, expected) + assert len(result) == 5 + + cp = df.copy() + cp.loc[1.0:5.0] = 0 + result = cp.loc[1.0:5.0] + assert (result == 0).values.all() + + def test_setitem_single_column_mixed_datetime(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 3)), + index=["a", "b", "c", "d", "e"], + columns=["foo", "bar", "baz"], + ) + + df["timestamp"] = Timestamp("20010102") + + # check our dtypes + result = df.dtypes + expected = Series( + [np.dtype("float64")] * 3 + [np.dtype("datetime64[s]")], + index=["foo", "bar", "baz", "timestamp"], + ) + tm.assert_series_equal(result, expected) + + # GH#16674 iNaT is treated as an integer when given by the user + with tm.assert_produces_warning( + FutureWarning, match="Setting an item of incompatible dtype" + ): + df.loc["b", "timestamp"] = iNaT + assert not isna(df.loc["b", "timestamp"]) + assert df["timestamp"].dtype == np.object_ + assert df.loc["b", "timestamp"] == iNaT + + # allow this syntax (as of GH#3216) + df.loc["c", "timestamp"] = np.nan + assert isna(df.loc["c", "timestamp"]) + + # allow this syntax + df.loc["d", :] = np.nan + assert not isna(df.loc["c", :]).all() + + def test_setitem_mixed_datetime(self): + # GH 9336 + expected = DataFrame( + { + "a": [0, 0, 0, 0, 13, 14], + "b": [ + datetime(2012, 1, 1), + 1, + "x", + "y", + datetime(2013, 1, 1), + datetime(2014, 1, 1), + ], + } + ) + df = DataFrame(0, columns=list("ab"), index=range(6)) + df["b"] = pd.NaT + df.loc[0, "b"] = datetime(2012, 1, 1) + with tm.assert_produces_warning( + FutureWarning, match="Setting an item of incompatible dtype" + ): + df.loc[1, "b"] = 1 + df.loc[[2, 3], "b"] = "x", "y" + A = np.array( + [ + [13, np.datetime64("2013-01-01T00:00:00")], + [14, np.datetime64("2014-01-01T00:00:00")], + ] + ) + df.loc[[4, 5], ["a", "b"]] = A + tm.assert_frame_equal(df, expected) + + def test_setitem_frame_float(self, float_frame): + piece = float_frame.loc[float_frame.index[:2], ["A", "B"]] + float_frame.loc[float_frame.index[-2] :, ["A", "B"]] = piece.values + result = float_frame.loc[float_frame.index[-2:], ["A", "B"]].values + expected = piece.values + tm.assert_almost_equal(result, expected) + + # dtype inference + @pytest.mark.xfail(using_string_dtype(), reason="TODO(infer_string)") + def test_setitem_frame_mixed(self, float_string_frame): + # GH 3216 + + # already aligned + f = float_string_frame.copy() + piece = DataFrame( + [[1.0, 2.0], [3.0, 4.0]], index=f.index[0:2], columns=["A", "B"] + ) + key = (f.index[slice(None, 2)], ["A", "B"]) + f.loc[key] = piece + tm.assert_almost_equal(f.loc[f.index[0:2], ["A", "B"]].values, piece.values) + + # dtype inference + @pytest.mark.xfail(using_string_dtype(), reason="TODO(infer_string)") + def test_setitem_frame_mixed_rows_unaligned(self, float_string_frame): + # GH#3216 rows unaligned + f = float_string_frame.copy() + piece = DataFrame( + [[1.0, 2.0], [3.0, 4.0], [5.0, 6.0], [7.0, 8.0]], + index=list(f.index[0:2]) + ["foo", "bar"], + columns=["A", "B"], + ) + key = (f.index[slice(None, 2)], ["A", "B"]) + f.loc[key] = piece + tm.assert_almost_equal( + f.loc[f.index[0:2:], ["A", "B"]].values, piece.values[0:2] + ) + + # dtype inference + @pytest.mark.xfail(using_string_dtype(), reason="TODO(infer_string)") + def test_setitem_frame_mixed_key_unaligned(self, float_string_frame): + # GH#3216 key is unaligned with values + f = float_string_frame.copy() + piece = f.loc[f.index[:2], ["A"]] + piece.index = f.index[-2:] + key = (f.index[slice(-2, None)], ["A", "B"]) + f.loc[key] = piece + piece["B"] = np.nan + tm.assert_almost_equal(f.loc[f.index[-2:], ["A", "B"]].values, piece.values) + + def test_setitem_frame_mixed_ndarray(self, float_string_frame): + # GH#3216 ndarray + f = float_string_frame.copy() + piece = float_string_frame.loc[f.index[:2], ["A", "B"]] + key = (f.index[slice(-2, None)], ["A", "B"]) + f.loc[key] = piece.values + tm.assert_almost_equal(f.loc[f.index[-2:], ["A", "B"]].values, piece.values) + + def test_setitem_frame_upcast(self): + # needs upcasting + df = DataFrame([[1, 2, "foo"], [3, 4, "bar"]], columns=["A", "B", "C"]) + df2 = df.copy() + with tm.assert_produces_warning(FutureWarning, match="incompatible dtype"): + df2.loc[:, ["A", "B"]] = df.loc[:, ["A", "B"]] + 0.5 + expected = df.reindex(columns=["A", "B"]) + expected += 0.5 + expected["C"] = df["C"] + tm.assert_frame_equal(df2, expected) + + def test_setitem_frame_align(self, float_frame): + piece = float_frame.loc[float_frame.index[:2], ["A", "B"]] + piece.index = float_frame.index[-2:] + piece.columns = ["A", "B"] + float_frame.loc[float_frame.index[-2:], ["A", "B"]] = piece + result = float_frame.loc[float_frame.index[-2:], ["A", "B"]].values + expected = piece.values + tm.assert_almost_equal(result, expected) + + def test_getitem_setitem_ix_duplicates(self): + # #1201 + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 3)), + index=["foo", "foo", "bar", "baz", "bar"], + ) + + result = df.loc["foo"] + expected = df[:2] + tm.assert_frame_equal(result, expected) + + result = df.loc["bar"] + expected = df.iloc[[2, 4]] + tm.assert_frame_equal(result, expected) + + result = df.loc["baz"] + expected = df.iloc[3] + tm.assert_series_equal(result, expected) + + def test_getitem_ix_boolean_duplicates_multiple(self): + # #1201 + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 3)), + index=["foo", "foo", "bar", "baz", "bar"], + ) + + result = df.loc[["bar"]] + exp = df.iloc[[2, 4]] + tm.assert_frame_equal(result, exp) + + result = df.loc[df[1] > 0] + exp = df[df[1] > 0] + tm.assert_frame_equal(result, exp) + + result = df.loc[df[0] > 0] + exp = df[df[0] > 0] + tm.assert_frame_equal(result, exp) + + @pytest.mark.parametrize("bool_value", [True, False]) + def test_getitem_setitem_ix_bool_keyerror(self, bool_value): + # #2199 + df = DataFrame({"a": [1, 2, 3]}) + message = f"{bool_value}: boolean label can not be used without a boolean index" + with pytest.raises(KeyError, match=message): + df.loc[bool_value] + + msg = "cannot use a single bool to index into setitem" + with pytest.raises(KeyError, match=msg): + df.loc[bool_value] = 0 + + # TODO: rename? remove? + def test_single_element_ix_dont_upcast(self, float_frame): + float_frame["E"] = 1 + assert issubclass(float_frame["E"].dtype.type, (int, np.integer)) + + result = float_frame.loc[float_frame.index[5], "E"] + assert is_integer(result) + + # GH 11617 + df = DataFrame({"a": [1.23]}) + df["b"] = 666 + + result = df.loc[0, "b"] + assert is_integer(result) + + expected = Series([666], [0], name="b") + result = df.loc[[0], "b"] + tm.assert_series_equal(result, expected) + + def test_iloc_callable_tuple_return_value(self): + # GH53769 + df = DataFrame(np.arange(40).reshape(10, 4), index=range(0, 20, 2)) + msg = "callable with iloc" + with tm.assert_produces_warning(FutureWarning, match=msg): + df.iloc[lambda _: (0,)] + with tm.assert_produces_warning(FutureWarning, match=msg): + df.iloc[lambda _: (0,)] = 1 + + def test_iloc_row(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 4)), index=range(0, 20, 2) + ) + + result = df.iloc[1] + exp = df.loc[2] + tm.assert_series_equal(result, exp) + + result = df.iloc[2] + exp = df.loc[4] + tm.assert_series_equal(result, exp) + + # slice + result = df.iloc[slice(4, 8)] + expected = df.loc[8:14] + tm.assert_frame_equal(result, expected) + + # list of integers + result = df.iloc[[1, 2, 4, 6]] + expected = df.reindex(df.index[[1, 2, 4, 6]]) + tm.assert_frame_equal(result, expected) + + def test_iloc_row_slice_view(self, using_copy_on_write, warn_copy_on_write): + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 4)), index=range(0, 20, 2) + ) + original = df.copy() + + # verify slice is view + # setting it makes it raise/warn + subset = df.iloc[slice(4, 8)] + + assert np.shares_memory(df[2], subset[2]) + + exp_col = original[2].copy() + with tm.assert_cow_warning(warn_copy_on_write): + subset.loc[:, 2] = 0.0 + if not using_copy_on_write: + exp_col._values[4:8] = 0.0 + + # With the enforcement of GH#45333 in 2.0, this remains a view + assert np.shares_memory(df[2], subset[2]) + tm.assert_series_equal(df[2], exp_col) + + def test_iloc_col(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((4, 10)), columns=range(0, 20, 2) + ) + + result = df.iloc[:, 1] + exp = df.loc[:, 2] + tm.assert_series_equal(result, exp) + + result = df.iloc[:, 2] + exp = df.loc[:, 4] + tm.assert_series_equal(result, exp) + + # slice + result = df.iloc[:, slice(4, 8)] + expected = df.loc[:, 8:14] + tm.assert_frame_equal(result, expected) + + # list of integers + result = df.iloc[:, [1, 2, 4, 6]] + expected = df.reindex(columns=df.columns[[1, 2, 4, 6]]) + tm.assert_frame_equal(result, expected) + + def test_iloc_col_slice_view( + self, using_array_manager, using_copy_on_write, warn_copy_on_write + ): + df = DataFrame( + np.random.default_rng(2).standard_normal((4, 10)), columns=range(0, 20, 2) + ) + original = df.copy() + subset = df.iloc[:, slice(4, 8)] + + if not using_array_manager and not using_copy_on_write: + # verify slice is view + assert np.shares_memory(df[8]._values, subset[8]._values) + + with tm.assert_cow_warning(warn_copy_on_write): + subset.loc[:, 8] = 0.0 + + assert (df[8] == 0).all() + + # with the enforcement of GH#45333 in 2.0, this remains a view + assert np.shares_memory(df[8]._values, subset[8]._values) + else: + if using_copy_on_write: + # verify slice is view + assert np.shares_memory(df[8]._values, subset[8]._values) + subset[8] = 0.0 + # subset changed + assert (subset[8] == 0).all() + # but df itself did not change (setitem replaces full column) + tm.assert_frame_equal(df, original) + + def test_loc_duplicates(self): + # gh-17105 + + # insert a duplicate element to the index + trange = date_range( + start=Timestamp(year=2017, month=1, day=1), + end=Timestamp(year=2017, month=1, day=5), + ) + + trange = trange.insert(loc=5, item=Timestamp(year=2017, month=1, day=5)) + + df = DataFrame(0, index=trange, columns=["A", "B"]) + bool_idx = np.array([False, False, False, False, False, True]) + + # assignment + df.loc[trange[bool_idx], "A"] = 6 + + expected = DataFrame( + {"A": [0, 0, 0, 0, 6, 6], "B": [0, 0, 0, 0, 0, 0]}, index=trange + ) + tm.assert_frame_equal(df, expected) + + # in-place + df = DataFrame(0, index=trange, columns=["A", "B"]) + df.loc[trange[bool_idx], "A"] += 6 + tm.assert_frame_equal(df, expected) + + def test_setitem_with_unaligned_tz_aware_datetime_column(self): + # GH 12981 + # Assignment of unaligned offset-aware datetime series. + # Make sure timezone isn't lost + column = Series(date_range("2015-01-01", periods=3, tz="utc"), name="dates") + df = DataFrame({"dates": column}) + df["dates"] = column[[1, 0, 2]] + tm.assert_series_equal(df["dates"], column) + + df = DataFrame({"dates": column}) + df.loc[[0, 1, 2], "dates"] = column[[1, 0, 2]] + tm.assert_series_equal(df["dates"], column) + + def test_loc_setitem_datetimelike_with_inference(self): + # GH 7592 + # assignment of timedeltas with NaT + + one_hour = timedelta(hours=1) + df = DataFrame(index=date_range("20130101", periods=4)) + df["A"] = np.array([1 * one_hour] * 4, dtype="m8[ns]") + df.loc[:, "B"] = np.array([2 * one_hour] * 4, dtype="m8[ns]") + df.loc[df.index[:3], "C"] = np.array([3 * one_hour] * 3, dtype="m8[ns]") + df.loc[:, "D"] = np.array([4 * one_hour] * 4, dtype="m8[ns]") + df.loc[df.index[:3], "E"] = np.array([5 * one_hour] * 3, dtype="m8[ns]") + df["F"] = np.timedelta64("NaT") + df.loc[df.index[:-1], "F"] = np.array([6 * one_hour] * 3, dtype="m8[ns]") + df.loc[df.index[-3] :, "G"] = date_range("20130101", periods=3) + df["H"] = np.datetime64("NaT") + result = df.dtypes + expected = Series( + [np.dtype("timedelta64[ns]")] * 6 + [np.dtype("datetime64[ns]")] * 2, + index=list("ABCDEFGH"), + ) + tm.assert_series_equal(result, expected) + + def test_getitem_boolean_indexing_mixed(self): + df = DataFrame( + { + 0: {35: np.nan, 40: np.nan, 43: np.nan, 49: np.nan, 50: np.nan}, + 1: { + 35: np.nan, + 40: 0.32632316859446198, + 43: np.nan, + 49: 0.32632316859446198, + 50: 0.39114724480578139, + }, + 2: { + 35: np.nan, + 40: np.nan, + 43: 0.29012581014105987, + 49: np.nan, + 50: np.nan, + }, + 3: {35: np.nan, 40: np.nan, 43: np.nan, 49: np.nan, 50: np.nan}, + 4: { + 35: 0.34215328467153283, + 40: np.nan, + 43: np.nan, + 49: np.nan, + 50: np.nan, + }, + "y": {35: 0, 40: 0, 43: 0, 49: 0, 50: 1}, + } + ) + + # mixed int/float ok + df2 = df.copy() + df2[df2 > 0.3] = 1 + expected = df.copy() + expected.loc[40, 1] = 1 + expected.loc[49, 1] = 1 + expected.loc[50, 1] = 1 + expected.loc[35, 4] = 1 + tm.assert_frame_equal(df2, expected) + + df["foo"] = "test" + msg = "not supported between instances|unorderable types|Invalid comparison" + + with pytest.raises(TypeError, match=msg): + df[df > 0.3] = 1 + + def test_type_error_multiindex(self): + # See gh-12218 + mi = MultiIndex.from_product([["x", "y"], [0, 1]], names=[None, "c"]) + dg = DataFrame( + [[1, 1, 2, 2], [3, 3, 4, 4]], columns=mi, index=Index([0, 1], name="i") + ) + with pytest.raises(InvalidIndexError, match="slice"): + dg[:, 0] + + index = Index(range(2), name="i") + columns = MultiIndex( + levels=[["x", "y"], [0, 1]], codes=[[0, 1], [0, 0]], names=[None, "c"] + ) + expected = DataFrame([[1, 2], [3, 4]], columns=columns, index=index) + + result = dg.loc[:, (slice(None), 0)] + tm.assert_frame_equal(result, expected) + + name = ("x", 0) + index = Index(range(2), name="i") + expected = Series([1, 3], index=index, name=name) + + result = dg["x", 0] + tm.assert_series_equal(result, expected) + + def test_getitem_interval_index_partial_indexing(self): + # GH#36490 + df = DataFrame( + np.ones((3, 4)), columns=pd.IntervalIndex.from_breaks(np.arange(5)) + ) + + expected = df.iloc[:, 0] + + res = df[0.5] + tm.assert_series_equal(res, expected) + + res = df.loc[:, 0.5] + tm.assert_series_equal(res, expected) + + def test_setitem_array_as_cell_value(self): + # GH#43422 + df = DataFrame(columns=["a", "b"], dtype=object) + df.loc[0] = {"a": np.zeros((2,)), "b": np.zeros((2, 2))} + expected = DataFrame({"a": [np.zeros((2,))], "b": [np.zeros((2, 2))]}) + tm.assert_frame_equal(df, expected) + + def test_iloc_setitem_nullable_2d_values(self): + df = DataFrame({"A": [1, 2, 3]}, dtype="Int64") + orig = df.copy() + + df.loc[:] = df.values[:, ::-1] + tm.assert_frame_equal(df, orig) + + df.loc[:] = pd.core.arrays.NumpyExtensionArray(df.values[:, ::-1]) + tm.assert_frame_equal(df, orig) + + df.iloc[:] = df.iloc[:, :].copy() + tm.assert_frame_equal(df, orig) + + def test_getitem_segfault_with_empty_like_object(self): + # GH#46848 + df = DataFrame(np.empty((1, 1), dtype=object)) + df[0] = np.empty_like(df[0]) + # this produces the segfault + df[[0]] + + @pytest.mark.filterwarnings("ignore:Setting a value on a view:FutureWarning") + @pytest.mark.parametrize( + "null", [pd.NaT, pd.NaT.to_numpy("M8[ns]"), pd.NaT.to_numpy("m8[ns]")] + ) + def test_setting_mismatched_na_into_nullable_fails( + self, null, any_numeric_ea_dtype + ): + # GH#44514 don't cast mismatched nulls to pd.NA + df = DataFrame({"A": [1, 2, 3]}, dtype=any_numeric_ea_dtype) + ser = df["A"].copy() + arr = ser._values + + msg = "|".join( + [ + r"timedelta64\[ns\] cannot be converted to (Floating|Integer)Dtype", + r"datetime64\[ns\] cannot be converted to (Floating|Integer)Dtype", + "'values' contains non-numeric NA", + r"Invalid value '.*' for dtype '(U?Int|Float)\d{1,2}'", + ] + ) + with pytest.raises(TypeError, match=msg): + arr[0] = null + + with pytest.raises(TypeError, match=msg): + arr[:2] = [null, null] + + with pytest.raises(TypeError, match=msg): + ser[0] = null + + with pytest.raises(TypeError, match=msg): + ser[:2] = [null, null] + + with pytest.raises(TypeError, match=msg): + ser.iloc[0] = null + + with pytest.raises(TypeError, match=msg): + ser.iloc[:2] = [null, null] + + with pytest.raises(TypeError, match=msg): + df.iloc[0, 0] = null + + with pytest.raises(TypeError, match=msg): + df.iloc[:2, 0] = [null, null] + + # Multi-Block + df2 = df.copy() + df2["B"] = ser.copy() + with pytest.raises(TypeError, match=msg): + df2.iloc[0, 0] = null + + with pytest.raises(TypeError, match=msg): + df2.iloc[:2, 0] = [null, null] + + def test_loc_expand_empty_frame_keep_index_name(self): + # GH#45621 + df = DataFrame(columns=["b"], index=Index([], name="a")) + df.loc[0] = 1 + expected = DataFrame({"b": [1]}, index=Index([0], name="a")) + tm.assert_frame_equal(df, expected) + + def test_loc_expand_empty_frame_keep_midx_names(self): + # GH#46317 + df = DataFrame( + columns=["d"], index=MultiIndex.from_tuples([], names=["a", "b", "c"]) + ) + df.loc[(1, 2, 3)] = "foo" + expected = DataFrame( + {"d": ["foo"]}, + index=MultiIndex.from_tuples([(1, 2, 3)], names=["a", "b", "c"]), + ) + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize( + "val, idxr", + [ + ("x", "a"), + ("x", ["a"]), + (1, "a"), + (1, ["a"]), + ], + ) + def test_loc_setitem_rhs_frame(self, idxr, val): + # GH#47578 + df = DataFrame({"a": [1, 2]}) + + with tm.assert_produces_warning( + FutureWarning, match="Setting an item of incompatible dtype" + ): + df.loc[:, idxr] = DataFrame({"a": [val, 11]}, index=[1, 2]) + expected = DataFrame({"a": [np.nan, val]}) + tm.assert_frame_equal(df, expected) + + @td.skip_array_manager_invalid_test + def test_iloc_setitem_enlarge_no_warning(self, warn_copy_on_write): + # GH#47381 + df = DataFrame(columns=["a", "b"]) + expected = df.copy() + view = df[:] + df.iloc[:, 0] = np.array([1, 2], dtype=np.float64) + tm.assert_frame_equal(view, expected) + + def test_loc_internals_not_updated_correctly(self): + # GH#47867 all steps are necessary to reproduce the initial bug + df = DataFrame( + {"bool_col": True, "a": 1, "b": 2.5}, + index=MultiIndex.from_arrays([[1, 2], [1, 2]], names=["idx1", "idx2"]), + ) + idx = [(1, 1)] + + df["c"] = 3 + df.loc[idx, "c"] = 0 + + df.loc[idx, "c"] + df.loc[idx, ["a", "b"]] + + df.loc[idx, "c"] = 15 + result = df.loc[idx, "c"] + expected = df = Series( + 15, + index=MultiIndex.from_arrays([[1], [1]], names=["idx1", "idx2"]), + name="c", + ) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("val", [None, [None], pd.NA, [pd.NA]]) + def test_iloc_setitem_string_list_na(self, val): + # GH#45469 + df = DataFrame({"a": ["a", "b", "c"]}, dtype="string") + df.iloc[[0], :] = val + expected = DataFrame({"a": [pd.NA, "b", "c"]}, dtype="string") + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize("val", [None, pd.NA]) + def test_iloc_setitem_string_na(self, val): + # GH#45469 + df = DataFrame({"a": ["a", "b", "c"]}, dtype="string") + df.iloc[0, :] = val + expected = DataFrame({"a": [pd.NA, "b", "c"]}, dtype="string") + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize("func", [list, Series, np.array]) + def test_iloc_setitem_ea_null_slice_length_one_list(self, func): + # GH#48016 + df = DataFrame({"a": [1, 2, 3]}, dtype="Int64") + df.iloc[:, func([0])] = 5 + expected = DataFrame({"a": [5, 5, 5]}, dtype="Int64") + tm.assert_frame_equal(df, expected) + + def test_loc_named_tuple_for_midx(self): + # GH#48124 + df = DataFrame( + index=MultiIndex.from_product( + [["A", "B"], ["a", "b", "c"]], names=["first", "second"] + ) + ) + indexer_tuple = namedtuple("Indexer", df.index.names) + idxr = indexer_tuple(first="A", second=["a", "b"]) + result = df.loc[idxr, :] + expected = DataFrame( + index=MultiIndex.from_tuples( + [("A", "a"), ("A", "b")], names=["first", "second"] + ) + ) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("indexer", [["a"], "a"]) + @pytest.mark.parametrize("col", [{}, {"b": 1}]) + def test_set_2d_casting_date_to_int(self, col, indexer): + # GH#49159 + df = DataFrame( + {"a": [Timestamp("2022-12-29"), Timestamp("2022-12-30")], **col}, + ) + df.loc[[1], indexer] = df["a"] + pd.Timedelta(days=1) + expected = DataFrame( + {"a": [Timestamp("2022-12-29"), Timestamp("2022-12-31")], **col}, + ) + tm.assert_frame_equal(df, expected) + + @pytest.mark.filterwarnings("ignore:Setting a value on a view:FutureWarning") + @pytest.mark.parametrize("has_ref", [True, False]) + @pytest.mark.parametrize("col", [{}, {"name": "a"}]) + def test_loc_setitem_reordering_with_all_true_indexer(self, col, has_ref): + # GH#48701 + n = 17 + df = DataFrame({**col, "x": range(n), "y": range(n)}) + value = df[["x", "y"]].copy() + expected = df.copy() + if has_ref: + view = df[:] # noqa: F841 + df.loc[n * [True], ["x", "y"]] = value + tm.assert_frame_equal(df, expected) + + def test_loc_rhs_empty_warning(self): + # GH48480 + df = DataFrame(columns=["a", "b"]) + expected = df.copy() + rhs = DataFrame(columns=["a"]) + with tm.assert_produces_warning(None): + df.loc[:, "a"] = rhs + tm.assert_frame_equal(df, expected) + + def test_iloc_ea_series_indexer(self): + # GH#49521 + df = DataFrame([[0, 1, 2, 3, 4], [5, 6, 7, 8, 9]]) + indexer = Series([0, 1], dtype="Int64") + row_indexer = Series([1], dtype="Int64") + result = df.iloc[row_indexer, indexer] + expected = DataFrame([[5, 6]], index=[1]) + tm.assert_frame_equal(result, expected) + + result = df.iloc[row_indexer.values, indexer.values] + tm.assert_frame_equal(result, expected) + + def test_iloc_ea_series_indexer_with_na(self): + # GH#49521 + df = DataFrame([[0, 1, 2, 3, 4], [5, 6, 7, 8, 9]]) + indexer = Series([0, pd.NA], dtype="Int64") + msg = "cannot convert" + with pytest.raises(ValueError, match=msg): + df.iloc[:, indexer] + with pytest.raises(ValueError, match=msg): + df.iloc[:, indexer.values] + + @pytest.mark.parametrize("indexer", [True, (True,)]) + @pytest.mark.parametrize("dtype", [bool, "boolean"]) + def test_loc_bool_multiindex(self, dtype, indexer): + # GH#47687 + midx = MultiIndex.from_arrays( + [ + Series([True, True, False, False], dtype=dtype), + Series([True, False, True, False], dtype=dtype), + ], + names=["a", "b"], + ) + df = DataFrame({"c": [1, 2, 3, 4]}, index=midx) + with tm.maybe_produces_warning(PerformanceWarning, isinstance(indexer, tuple)): + result = df.loc[indexer] + expected = DataFrame( + {"c": [1, 2]}, index=Index([True, False], name="b", dtype=dtype) + ) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("utc", [False, True]) + @pytest.mark.parametrize("indexer", ["date", ["date"]]) + def test_loc_datetime_assignment_dtype_does_not_change(self, utc, indexer): + # GH#49837 + df = DataFrame( + { + "date": to_datetime( + [datetime(2022, 1, 20), datetime(2022, 1, 22)], utc=utc + ), + "update": [True, False], + } + ) + expected = df.copy(deep=True) + + update_df = df[df["update"]] + + df.loc[df["update"], indexer] = update_df["date"] + + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize("indexer, idx", [(tm.loc, 1), (tm.iloc, 2)]) + def test_setitem_value_coercing_dtypes(self, indexer, idx): + # GH#50467 + df = DataFrame([["1", np.nan], ["2", np.nan], ["3", np.nan]], dtype=object) + rhs = DataFrame([[1, np.nan], [2, np.nan]]) + indexer(df)[:idx, :] = rhs + expected = DataFrame([[1, np.nan], [2, np.nan], ["3", np.nan]], dtype=object) + tm.assert_frame_equal(df, expected) + + +class TestDataFrameIndexingUInt64: + def test_setitem(self): + df = DataFrame( + {"A": np.arange(3), "B": [2**63, 2**63 + 5, 2**63 + 10]}, + dtype=np.uint64, + ) + idx = df["A"].rename("foo") + + # setitem + assert "C" not in df.columns + df["C"] = idx + tm.assert_series_equal(df["C"], Series(idx, name="C")) + + assert "D" not in df.columns + df["D"] = "foo" + df["D"] = idx + tm.assert_series_equal(df["D"], Series(idx, name="D")) + del df["D"] + + # With NaN: because uint64 has no NaN element, + # the column should be cast to object. + df2 = df.copy() + with tm.assert_produces_warning(FutureWarning, match="incompatible dtype"): + df2.iloc[1, 1] = pd.NaT + df2.iloc[1, 2] = pd.NaT + result = df2["B"] + tm.assert_series_equal(notna(result), Series([True, False, True], name="B")) + tm.assert_series_equal( + df2.dtypes, + Series( + [np.dtype("uint64"), np.dtype("O"), np.dtype("O")], + index=["A", "B", "C"], + ), + ) + + +def test_object_casting_indexing_wraps_datetimelike(using_array_manager): + # GH#31649, check the indexing methods all the way down the stack + df = DataFrame( + { + "A": [1, 2], + "B": date_range("2000", periods=2), + "C": pd.timedelta_range("1 Day", periods=2), + } + ) + + ser = df.loc[0] + assert isinstance(ser.values[1], Timestamp) + assert isinstance(ser.values[2], pd.Timedelta) + + ser = df.iloc[0] + assert isinstance(ser.values[1], Timestamp) + assert isinstance(ser.values[2], pd.Timedelta) + + ser = df.xs(0, axis=0) + assert isinstance(ser.values[1], Timestamp) + assert isinstance(ser.values[2], pd.Timedelta) + + if using_array_manager: + # remainder of the test checking BlockManager internals + return + + mgr = df._mgr + mgr._rebuild_blknos_and_blklocs() + arr = mgr.fast_xs(0).array + assert isinstance(arr[1], Timestamp) + assert isinstance(arr[2], pd.Timedelta) + + blk = mgr.blocks[mgr.blknos[1]] + assert blk.dtype == "M8[ns]" # we got the right block + val = blk.iget((0, 0)) + assert isinstance(val, Timestamp) + + blk = mgr.blocks[mgr.blknos[2]] + assert blk.dtype == "m8[ns]" # we got the right block + val = blk.iget((0, 0)) + assert isinstance(val, pd.Timedelta) + + +msg1 = r"Cannot setitem on a Categorical with a new category( \(.*\))?, set the" +msg2 = "Cannot set a Categorical with another, without identical categories" + + +class TestLocILocDataFrameCategorical: + @pytest.fixture + def orig(self): + cats = Categorical(["a", "a", "a", "a", "a", "a", "a"], categories=["a", "b"]) + idx = Index(["h", "i", "j", "k", "l", "m", "n"]) + values = [1, 1, 1, 1, 1, 1, 1] + orig = DataFrame({"cats": cats, "values": values}, index=idx) + return orig + + @pytest.fixture + def exp_single_row(self): + # The expected values if we change a single row + cats1 = Categorical(["a", "a", "b", "a", "a", "a", "a"], categories=["a", "b"]) + idx1 = Index(["h", "i", "j", "k", "l", "m", "n"]) + values1 = [1, 1, 2, 1, 1, 1, 1] + exp_single_row = DataFrame({"cats": cats1, "values": values1}, index=idx1) + return exp_single_row + + @pytest.fixture + def exp_multi_row(self): + # assign multiple rows (mixed values) (-> array) -> exp_multi_row + # changed multiple rows + cats2 = Categorical(["a", "a", "b", "b", "a", "a", "a"], categories=["a", "b"]) + idx2 = Index(["h", "i", "j", "k", "l", "m", "n"]) + values2 = [1, 1, 2, 2, 1, 1, 1] + exp_multi_row = DataFrame({"cats": cats2, "values": values2}, index=idx2) + return exp_multi_row + + @pytest.fixture + def exp_parts_cats_col(self): + # changed part of the cats column + cats3 = Categorical(["a", "a", "b", "b", "a", "a", "a"], categories=["a", "b"]) + idx3 = Index(["h", "i", "j", "k", "l", "m", "n"]) + values3 = [1, 1, 1, 1, 1, 1, 1] + exp_parts_cats_col = DataFrame({"cats": cats3, "values": values3}, index=idx3) + return exp_parts_cats_col + + @pytest.fixture + def exp_single_cats_value(self): + # changed single value in cats col + cats4 = Categorical(["a", "a", "b", "a", "a", "a", "a"], categories=["a", "b"]) + idx4 = Index(["h", "i", "j", "k", "l", "m", "n"]) + values4 = [1, 1, 1, 1, 1, 1, 1] + exp_single_cats_value = DataFrame( + {"cats": cats4, "values": values4}, index=idx4 + ) + return exp_single_cats_value + + @pytest.mark.parametrize("indexer", [tm.loc, tm.iloc]) + def test_loc_iloc_setitem_list_of_lists(self, orig, exp_multi_row, indexer): + # - assign multiple rows (mixed values) -> exp_multi_row + df = orig.copy() + + key = slice(2, 4) + if indexer is tm.loc: + key = slice("j", "k") + + indexer(df)[key, :] = [["b", 2], ["b", 2]] + tm.assert_frame_equal(df, exp_multi_row) + + df = orig.copy() + with pytest.raises(TypeError, match=msg1): + indexer(df)[key, :] = [["c", 2], ["c", 2]] + + @pytest.mark.parametrize("indexer", [tm.loc, tm.iloc, tm.at, tm.iat]) + def test_loc_iloc_at_iat_setitem_single_value_in_categories( + self, orig, exp_single_cats_value, indexer + ): + # - assign a single value -> exp_single_cats_value + df = orig.copy() + + key = (2, 0) + if indexer in [tm.loc, tm.at]: + key = (df.index[2], df.columns[0]) + + # "b" is among the categories for df["cat"}] + indexer(df)[key] = "b" + tm.assert_frame_equal(df, exp_single_cats_value) + + # "c" is not among the categories for df["cat"] + with pytest.raises(TypeError, match=msg1): + indexer(df)[key] = "c" + + @pytest.mark.parametrize("indexer", [tm.loc, tm.iloc]) + def test_loc_iloc_setitem_mask_single_value_in_categories( + self, orig, exp_single_cats_value, indexer + ): + # mask with single True + df = orig.copy() + + mask = df.index == "j" + key = 0 + if indexer is tm.loc: + key = df.columns[key] + + indexer(df)[mask, key] = "b" + tm.assert_frame_equal(df, exp_single_cats_value) + + @pytest.mark.parametrize("indexer", [tm.loc, tm.iloc]) + def test_loc_iloc_setitem_full_row_non_categorical_rhs( + self, orig, exp_single_row, indexer + ): + # - assign a complete row (mixed values) -> exp_single_row + df = orig.copy() + + key = 2 + if indexer is tm.loc: + key = df.index[2] + + # not categorical dtype, but "b" _is_ among the categories for df["cat"] + indexer(df)[key, :] = ["b", 2] + tm.assert_frame_equal(df, exp_single_row) + + # "c" is not among the categories for df["cat"] + with pytest.raises(TypeError, match=msg1): + indexer(df)[key, :] = ["c", 2] + + @pytest.mark.parametrize("indexer", [tm.loc, tm.iloc]) + def test_loc_iloc_setitem_partial_col_categorical_rhs( + self, orig, exp_parts_cats_col, indexer + ): + # assign a part of a column with dtype == categorical -> + # exp_parts_cats_col + df = orig.copy() + + key = (slice(2, 4), 0) + if indexer is tm.loc: + key = (slice("j", "k"), df.columns[0]) + + # same categories as we currently have in df["cats"] + compat = Categorical(["b", "b"], categories=["a", "b"]) + indexer(df)[key] = compat + tm.assert_frame_equal(df, exp_parts_cats_col) + + # categories do not match df["cat"]'s, but "b" is among them + semi_compat = Categorical(list("bb"), categories=list("abc")) + with pytest.raises(TypeError, match=msg2): + # different categories but holdable values + # -> not sure if this should fail or pass + indexer(df)[key] = semi_compat + + # categories do not match df["cat"]'s, and "c" is not among them + incompat = Categorical(list("cc"), categories=list("abc")) + with pytest.raises(TypeError, match=msg2): + # different values + indexer(df)[key] = incompat + + @pytest.mark.parametrize("indexer", [tm.loc, tm.iloc]) + def test_loc_iloc_setitem_non_categorical_rhs( + self, orig, exp_parts_cats_col, indexer + ): + # assign a part of a column with dtype != categorical -> exp_parts_cats_col + df = orig.copy() + + key = (slice(2, 4), 0) + if indexer is tm.loc: + key = (slice("j", "k"), df.columns[0]) + + # "b" is among the categories for df["cat"] + indexer(df)[key] = ["b", "b"] + tm.assert_frame_equal(df, exp_parts_cats_col) + + # "c" not part of the categories + with pytest.raises(TypeError, match=msg1): + indexer(df)[key] = ["c", "c"] + + @pytest.mark.parametrize("indexer", [tm.getitem, tm.loc, tm.iloc]) + def test_getitem_preserve_object_index_with_dates(self, indexer): + # https://github.com/pandas-dev/pandas/pull/42950 - when selecting a column + # from dataframe, don't try to infer object dtype index on Series construction + idx = date_range("2012", periods=3).astype(object) + df = DataFrame({0: [1, 2, 3]}, index=idx) + assert df.index.dtype == object + + if indexer is tm.getitem: + ser = indexer(df)[0] + else: + ser = indexer(df)[:, 0] + + assert ser.index.dtype == object + + def test_loc_on_multiindex_one_level(self): + # GH#45779 + df = DataFrame( + data=[[0], [1]], + index=MultiIndex.from_tuples([("a",), ("b",)], names=["first"]), + ) + expected = DataFrame( + data=[[0]], index=MultiIndex.from_tuples([("a",)], names=["first"]) + ) + result = df.loc["a"] + tm.assert_frame_equal(result, expected) + + +class TestDeprecatedIndexers: + @pytest.mark.parametrize( + "key", [{1}, {1: 1}, ({1}, "a"), ({1: 1}, "a"), (1, {"a"}), (1, {"a": "a"})] + ) + def test_getitem_dict_and_set_deprecated(self, key): + # GH#42825 enforced in 2.0 + df = DataFrame([[1, 2], [3, 4]], columns=["a", "b"]) + with pytest.raises(TypeError, match="as an indexer is not supported"): + df.loc[key] + + @pytest.mark.parametrize( + "key", + [ + {1}, + {1: 1}, + (({1}, 2), "a"), + (({1: 1}, 2), "a"), + ((1, 2), {"a"}), + ((1, 2), {"a": "a"}), + ], + ) + def test_getitem_dict_and_set_deprecated_multiindex(self, key): + # GH#42825 enforced in 2.0 + df = DataFrame( + [[1, 2], [3, 4]], + columns=["a", "b"], + index=MultiIndex.from_tuples([(1, 2), (3, 4)]), + ) + with pytest.raises(TypeError, match="as an indexer is not supported"): + df.loc[key] + + @pytest.mark.parametrize( + "key", [{1}, {1: 1}, ({1}, "a"), ({1: 1}, "a"), (1, {"a"}), (1, {"a": "a"})] + ) + def test_setitem_dict_and_set_disallowed(self, key): + # GH#42825 enforced in 2.0 + df = DataFrame([[1, 2], [3, 4]], columns=["a", "b"]) + with pytest.raises(TypeError, match="as an indexer is not supported"): + df.loc[key] = 1 + + @pytest.mark.parametrize( + "key", + [ + {1}, + {1: 1}, + (({1}, 2), "a"), + (({1: 1}, 2), "a"), + ((1, 2), {"a"}), + ((1, 2), {"a": "a"}), + ], + ) + def test_setitem_dict_and_set_disallowed_multiindex(self, key): + # GH#42825 enforced in 2.0 + df = DataFrame( + [[1, 2], [3, 4]], + columns=["a", "b"], + index=MultiIndex.from_tuples([(1, 2), (3, 4)]), + ) + with pytest.raises(TypeError, match="as an indexer is not supported"): + df.loc[key] = 1 + + +def test_adding_new_conditional_column() -> None: + # https://github.com/pandas-dev/pandas/issues/55025 + df = DataFrame({"x": [1]}) + df.loc[df["x"] == 1, "y"] = "1" + expected = DataFrame({"x": [1], "y": ["1"]}) + tm.assert_frame_equal(df, expected) + + df = DataFrame({"x": [1]}) + # try inserting something which numpy would store as 'object' + value = lambda x: x + df.loc[df["x"] == 1, "y"] = value + expected = DataFrame({"x": [1], "y": [value]}) + tm.assert_frame_equal(df, expected) + + +@pytest.mark.parametrize( + ("dtype", "infer_string"), + [ + (object, False), + (pd.StringDtype(na_value=np.nan), True), + ], +) +def test_adding_new_conditional_column_with_string(dtype, infer_string) -> None: + # https://github.com/pandas-dev/pandas/issues/56204 + df = DataFrame({"a": [1, 2], "b": [3, 4]}) + with pd.option_context("future.infer_string", infer_string): + df.loc[df["a"] == 1, "c"] = "1" + expected = DataFrame({"a": [1, 2], "b": [3, 4], "c": ["1", float("nan")]}).astype( + {"a": "int64", "b": "int64", "c": dtype} + ) + tm.assert_frame_equal(df, expected) + + +def test_add_new_column_infer_string(): + # GH#55366 + df = DataFrame({"x": [1]}) + with pd.option_context("future.infer_string", True): + df.loc[df["x"] == 1, "y"] = "1" + expected = DataFrame( + {"x": [1], "y": Series(["1"], dtype=pd.StringDtype(na_value=np.nan))}, + columns=Index(["x", "y"], dtype="str"), + ) + tm.assert_frame_equal(df, expected) + + +class TestSetitemValidation: + # This is adapted from pandas/tests/arrays/masked/test_indexing.py + # but checks for warnings instead of errors. + def _check_setitem_invalid(self, df, invalid, indexer, warn): + msg = "Setting an item of incompatible dtype is deprecated" + msg = re.escape(msg) + + orig_df = df.copy() + + # iloc + with tm.assert_produces_warning(warn, match=msg): + df.iloc[indexer, 0] = invalid + df = orig_df.copy() + + # loc + with tm.assert_produces_warning(warn, match=msg): + df.loc[indexer, "a"] = invalid + df = orig_df.copy() + + _invalid_scalars = [ + 1 + 2j, + "True", + "1", + "1.0", + pd.NaT, + np.datetime64("NaT"), + np.timedelta64("NaT"), + ] + _indexers = [0, [0], slice(0, 1), [True, False, False], slice(None, None, None)] + + @pytest.mark.parametrize( + "invalid", _invalid_scalars + [1, 1.0, np.int64(1), np.float64(1)] + ) + @pytest.mark.parametrize("indexer", _indexers) + def test_setitem_validation_scalar_bool(self, invalid, indexer): + df = DataFrame({"a": [True, False, False]}, dtype="bool") + self._check_setitem_invalid(df, invalid, indexer, FutureWarning) + + @pytest.mark.parametrize("invalid", _invalid_scalars + [True, 1.5, np.float64(1.5)]) + @pytest.mark.parametrize("indexer", _indexers) + def test_setitem_validation_scalar_int(self, invalid, any_int_numpy_dtype, indexer): + df = DataFrame({"a": [1, 2, 3]}, dtype=any_int_numpy_dtype) + if isna(invalid) and invalid is not pd.NaT and not np.isnat(invalid): + warn = None + else: + warn = FutureWarning + self._check_setitem_invalid(df, invalid, indexer, warn) + + @pytest.mark.parametrize("invalid", _invalid_scalars + [True]) + @pytest.mark.parametrize("indexer", _indexers) + def test_setitem_validation_scalar_float(self, invalid, float_numpy_dtype, indexer): + df = DataFrame({"a": [1, 2, None]}, dtype=float_numpy_dtype) + self._check_setitem_invalid(df, invalid, indexer, FutureWarning) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_insert.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_insert.py new file mode 100644 index 0000000000000000000000000000000000000000..7e702bdc993bd1444dc48f85e016c768dadd042f --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_insert.py @@ -0,0 +1,120 @@ +""" +test_insert is specifically for the DataFrame.insert method; not to be +confused with tests with "insert" in their names that are really testing +__setitem__. +""" +import numpy as np +import pytest + +from pandas.errors import PerformanceWarning + +from pandas import ( + DataFrame, + Index, +) +import pandas._testing as tm + + +class TestDataFrameInsert: + def test_insert(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 3)), + index=np.arange(5), + columns=["c", "b", "a"], + ) + + df.insert(0, "foo", df["a"]) + tm.assert_index_equal(df.columns, Index(["foo", "c", "b", "a"])) + tm.assert_series_equal(df["a"], df["foo"], check_names=False) + + df.insert(2, "bar", df["c"]) + tm.assert_index_equal(df.columns, Index(["foo", "c", "bar", "b", "a"])) + tm.assert_almost_equal(df["c"], df["bar"], check_names=False) + + with pytest.raises(ValueError, match="already exists"): + df.insert(1, "a", df["b"]) + + msg = "cannot insert c, already exists" + with pytest.raises(ValueError, match=msg): + df.insert(1, "c", df["b"]) + + df.columns.name = "some_name" + # preserve columns name field + df.insert(0, "baz", df["c"]) + assert df.columns.name == "some_name" + + def test_insert_column_bug_4032(self): + # GH#4032, inserting a column and renaming causing errors + df = DataFrame({"b": [1.1, 2.2]}) + + df = df.rename(columns={}) + df.insert(0, "a", [1, 2]) + result = df.rename(columns={}) + + expected = DataFrame([[1, 1.1], [2, 2.2]], columns=["a", "b"]) + tm.assert_frame_equal(result, expected) + + df.insert(0, "c", [1.3, 2.3]) + result = df.rename(columns={}) + + expected = DataFrame([[1.3, 1, 1.1], [2.3, 2, 2.2]], columns=["c", "a", "b"]) + tm.assert_frame_equal(result, expected) + + def test_insert_with_columns_dups(self): + # GH#14291 + df = DataFrame() + df.insert(0, "A", ["g", "h", "i"], allow_duplicates=True) + df.insert(0, "A", ["d", "e", "f"], allow_duplicates=True) + df.insert(0, "A", ["a", "b", "c"], allow_duplicates=True) + exp = DataFrame( + [["a", "d", "g"], ["b", "e", "h"], ["c", "f", "i"]], columns=["A", "A", "A"] + ) + tm.assert_frame_equal(df, exp) + + def test_insert_item_cache(self, using_array_manager, using_copy_on_write): + df = DataFrame(np.random.default_rng(2).standard_normal((4, 3))) + ser = df[0] + + if using_array_manager: + expected_warning = None + else: + # with BlockManager warn about high fragmentation of single dtype + expected_warning = PerformanceWarning + + with tm.assert_produces_warning(expected_warning): + for n in range(100): + df[n + 3] = df[1] * n + + if using_copy_on_write: + ser.iloc[0] = 99 + assert df.iloc[0, 0] == df[0][0] + assert df.iloc[0, 0] != 99 + else: + ser.values[0] = 99 + assert df.iloc[0, 0] == df[0][0] + assert df.iloc[0, 0] == 99 + + def test_insert_EA_no_warning(self): + # PerformanceWarning about fragmented frame should not be raised when + # using EAs (https://github.com/pandas-dev/pandas/issues/44098) + df = DataFrame( + np.random.default_rng(2).integers(0, 100, size=(3, 100)), dtype="Int64" + ) + with tm.assert_produces_warning(None): + df["a"] = np.array([1, 2, 3]) + + def test_insert_frame(self): + # GH#42403 + df = DataFrame({"col1": [1, 2], "col2": [3, 4]}) + + msg = ( + "Expected a one-dimensional object, got a DataFrame with 2 columns instead." + ) + with pytest.raises(ValueError, match=msg): + df.insert(1, "newcol", df) + + def test_insert_int64_loc(self): + # GH#53193 + df = DataFrame({"a": [1, 2]}) + df.insert(np.int64(0), "b", 0) + tm.assert_frame_equal(df, DataFrame({"b": [0, 0], "a": [1, 2]})) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_mask.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_mask.py new file mode 100644 index 0000000000000000000000000000000000000000..264e27c9c122ebb6d59c5b16531ebbdc8ce51320 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_mask.py @@ -0,0 +1,152 @@ +""" +Tests for DataFrame.mask; tests DataFrame.where as a side-effect. +""" + +import numpy as np + +from pandas import ( + NA, + DataFrame, + Float64Dtype, + Series, + StringDtype, + Timedelta, + isna, +) +import pandas._testing as tm + + +class TestDataFrameMask: + def test_mask(self): + df = DataFrame(np.random.default_rng(2).standard_normal((5, 3))) + cond = df > 0 + + rs = df.where(cond, np.nan) + tm.assert_frame_equal(rs, df.mask(df <= 0)) + tm.assert_frame_equal(rs, df.mask(~cond)) + + other = DataFrame(np.random.default_rng(2).standard_normal((5, 3))) + rs = df.where(cond, other) + tm.assert_frame_equal(rs, df.mask(df <= 0, other)) + tm.assert_frame_equal(rs, df.mask(~cond, other)) + + def test_mask2(self): + # see GH#21891 + df = DataFrame([1, 2]) + res = df.mask([[True], [False]]) + + exp = DataFrame([np.nan, 2]) + tm.assert_frame_equal(res, exp) + + def test_mask_inplace(self): + # GH#8801 + df = DataFrame(np.random.default_rng(2).standard_normal((5, 3))) + cond = df > 0 + + rdf = df.copy() + + return_value = rdf.where(cond, inplace=True) + assert return_value is None + tm.assert_frame_equal(rdf, df.where(cond)) + tm.assert_frame_equal(rdf, df.mask(~cond)) + + rdf = df.copy() + return_value = rdf.where(cond, -df, inplace=True) + assert return_value is None + tm.assert_frame_equal(rdf, df.where(cond, -df)) + tm.assert_frame_equal(rdf, df.mask(~cond, -df)) + + def test_mask_edge_case_1xN_frame(self): + # GH#4071 + df = DataFrame([[1, 2]]) + res = df.mask(DataFrame([[True, False]])) + expec = DataFrame([[np.nan, 2]]) + tm.assert_frame_equal(res, expec) + + def test_mask_callable(self): + # GH#12533 + df = DataFrame([[1, 2, 3], [4, 5, 6], [7, 8, 9]]) + result = df.mask(lambda x: x > 4, lambda x: x + 1) + exp = DataFrame([[1, 2, 3], [4, 6, 7], [8, 9, 10]]) + tm.assert_frame_equal(result, exp) + tm.assert_frame_equal(result, df.mask(df > 4, df + 1)) + + # return ndarray and scalar + result = df.mask(lambda x: (x % 2 == 0).values, lambda x: 99) + exp = DataFrame([[1, 99, 3], [99, 5, 99], [7, 99, 9]]) + tm.assert_frame_equal(result, exp) + tm.assert_frame_equal(result, df.mask(df % 2 == 0, 99)) + + # chain + result = (df + 2).mask(lambda x: x > 8, lambda x: x + 10) + exp = DataFrame([[3, 4, 5], [6, 7, 8], [19, 20, 21]]) + tm.assert_frame_equal(result, exp) + tm.assert_frame_equal(result, (df + 2).mask((df + 2) > 8, (df + 2) + 10)) + + def test_mask_dtype_bool_conversion(self): + # GH#3733 + df = DataFrame(data=np.random.default_rng(2).standard_normal((100, 50))) + df = df.where(df > 0) # create nans + bools = df > 0 + mask = isna(df) + expected = bools.astype(object).mask(mask) + result = bools.mask(mask) + tm.assert_frame_equal(result, expected) + + +def test_mask_stringdtype(frame_or_series): + # GH 40824 + obj = DataFrame( + {"A": ["foo", "bar", "baz", NA]}, + index=["id1", "id2", "id3", "id4"], + dtype=StringDtype(), + ) + filtered_obj = DataFrame( + {"A": ["this", "that"]}, index=["id2", "id3"], dtype=StringDtype() + ) + expected = DataFrame( + {"A": [NA, "this", "that", NA]}, + index=["id1", "id2", "id3", "id4"], + dtype=StringDtype(), + ) + if frame_or_series is Series: + obj = obj["A"] + filtered_obj = filtered_obj["A"] + expected = expected["A"] + + filter_ser = Series([False, True, True, False]) + result = obj.mask(filter_ser, filtered_obj) + + tm.assert_equal(result, expected) + + +def test_mask_where_dtype_timedelta(): + # https://github.com/pandas-dev/pandas/issues/39548 + df = DataFrame([Timedelta(i, unit="d") for i in range(5)]) + + expected = DataFrame(np.full(5, np.nan, dtype="timedelta64[ns]")) + tm.assert_frame_equal(df.mask(df.notna()), expected) + + expected = DataFrame( + [np.nan, np.nan, np.nan, Timedelta("3 day"), Timedelta("4 day")] + ) + tm.assert_frame_equal(df.where(df > Timedelta(2, unit="d")), expected) + + +def test_mask_return_dtype(): + # GH#50488 + ser = Series([0.0, 1.0, 2.0, 3.0], dtype=Float64Dtype()) + cond = ~ser.isna() + other = Series([True, False, True, False]) + excepted = Series([1.0, 0.0, 1.0, 0.0], dtype=ser.dtype) + result = ser.mask(cond, other) + tm.assert_series_equal(result, excepted) + + +def test_mask_inplace_no_other(): + # GH#51685 + df = DataFrame({"a": [1.0, 2.0], "b": ["x", "y"]}) + cond = DataFrame({"a": [True, False], "b": [False, True]}) + df.mask(cond, inplace=True) + expected = DataFrame({"a": [np.nan, 2], "b": ["x", np.nan]}) + tm.assert_frame_equal(df, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_set_value.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_set_value.py new file mode 100644 index 0000000000000000000000000000000000000000..3d23e13264911c52dabd58c12ed133f8cf1766a6 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_set_value.py @@ -0,0 +1,77 @@ +import numpy as np + +from pandas.core.dtypes.common import is_float_dtype + +from pandas import ( + DataFrame, + isna, +) +import pandas._testing as tm + + +class TestSetValue: + def test_set_value(self, float_frame): + for idx in float_frame.index: + for col in float_frame.columns: + float_frame._set_value(idx, col, 1) + assert float_frame[col][idx] == 1 + + def test_set_value_resize(self, float_frame, using_infer_string): + res = float_frame._set_value("foobar", "B", 0) + assert res is None + assert float_frame.index[-1] == "foobar" + assert float_frame._get_value("foobar", "B") == 0 + + float_frame.loc["foobar", "qux"] = 0 + assert float_frame._get_value("foobar", "qux") == 0 + + res = float_frame.copy() + res._set_value("foobar", "baz", "sam") + if using_infer_string: + assert res["baz"].dtype == "str" + else: + assert res["baz"].dtype == np.object_ + res = float_frame.copy() + res._set_value("foobar", "baz", True) + assert res["baz"].dtype == np.object_ + + res = float_frame.copy() + res._set_value("foobar", "baz", 5) + assert is_float_dtype(res["baz"]) + assert isna(res["baz"].drop(["foobar"])).all() + + with tm.assert_produces_warning( + FutureWarning, match="Setting an item of incompatible dtype" + ): + res._set_value("foobar", "baz", "sam") + assert res.loc["foobar", "baz"] == "sam" + + def test_set_value_with_index_dtype_change(self): + df_orig = DataFrame( + np.random.default_rng(2).standard_normal((3, 3)), + index=range(3), + columns=list("ABC"), + ) + + # this is actually ambiguous as the 2 is interpreted as a positional + # so column is not created + df = df_orig.copy() + df._set_value("C", 2, 1.0) + assert list(df.index) == list(df_orig.index) + ["C"] + # assert list(df.columns) == list(df_orig.columns) + [2] + + df = df_orig.copy() + df.loc["C", 2] = 1.0 + assert list(df.index) == list(df_orig.index) + ["C"] + # assert list(df.columns) == list(df_orig.columns) + [2] + + # create both new + df = df_orig.copy() + df._set_value("C", "D", 1.0) + assert list(df.index) == list(df_orig.index) + ["C"] + assert list(df.columns) == list(df_orig.columns) + ["D"] + + df = df_orig.copy() + df.loc["C", "D"] = 1.0 + assert list(df.index) == list(df_orig.index) + ["C"] + assert list(df.columns) == list(df_orig.columns) + ["D"] diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_setitem.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_setitem.py new file mode 100644 index 0000000000000000000000000000000000000000..2c8456c6c06803d1f1bc6f51845014847fc6b034 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_setitem.py @@ -0,0 +1,1526 @@ +from datetime import datetime + +import numpy as np +import pytest + +from pandas.errors import SettingWithCopyWarning +import pandas.util._test_decorators as td + +from pandas.core.dtypes.base import _registry as ea_registry +from pandas.core.dtypes.common import is_object_dtype +from pandas.core.dtypes.dtypes import ( + CategoricalDtype, + DatetimeTZDtype, + IntervalDtype, + PeriodDtype, +) + +import pandas as pd +from pandas import ( + Categorical, + DataFrame, + DatetimeIndex, + Index, + Interval, + IntervalIndex, + MultiIndex, + NaT, + Period, + PeriodIndex, + Series, + Timestamp, + cut, + date_range, + notna, + period_range, +) +import pandas._testing as tm +from pandas.core.arrays import SparseArray + +from pandas.tseries.offsets import BDay + + +class TestDataFrameSetItem: + def test_setitem_str_subclass(self): + # GH#37366 + class mystring(str): + pass + + data = ["2020-10-22 01:21:00+00:00"] + index = DatetimeIndex(data) + df = DataFrame({"a": [1]}, index=index) + df["b"] = 2 + df[mystring("c")] = 3 + expected = DataFrame({"a": [1], "b": [2], mystring("c"): [3]}, index=index) + tm.assert_equal(df, expected) + + @pytest.mark.parametrize( + "dtype", ["int32", "int64", "uint32", "uint64", "float32", "float64"] + ) + def test_setitem_dtype(self, dtype, float_frame): + # Use integers since casting negative floats to uints is undefined + arr = np.random.default_rng(2).integers(1, 10, len(float_frame)) + + float_frame[dtype] = np.array(arr, dtype=dtype) + assert float_frame[dtype].dtype.name == dtype + + def test_setitem_list_not_dataframe(self, float_frame): + data = np.random.default_rng(2).standard_normal((len(float_frame), 2)) + float_frame[["A", "B"]] = data + tm.assert_almost_equal(float_frame[["A", "B"]].values, data) + + def test_setitem_error_msmgs(self): + # GH 7432 + df = DataFrame( + {"bar": [1, 2, 3], "baz": ["d", "e", "f"]}, + index=Index(["a", "b", "c"], name="foo"), + ) + ser = Series( + ["g", "h", "i", "j"], + index=Index(["a", "b", "c", "a"], name="foo"), + name="fiz", + ) + msg = "cannot reindex on an axis with duplicate labels" + with pytest.raises(ValueError, match=msg): + df["newcol"] = ser + + # GH 4107, more descriptive error message + df = DataFrame( + np.random.default_rng(2).integers(0, 2, (4, 4)), + columns=["a", "b", "c", "d"], + ) + + msg = "Cannot set a DataFrame with multiple columns to the single column gr" + with pytest.raises(ValueError, match=msg): + df["gr"] = df.groupby(["b", "c"]).count() + + # GH 55956, specific message for zero columns + msg = "Cannot set a DataFrame without columns to the column gr" + with pytest.raises(ValueError, match=msg): + df["gr"] = DataFrame() + + def test_setitem_benchmark(self): + # from the vb_suite/frame_methods/frame_insert_columns + N = 10 + K = 5 + df = DataFrame(index=range(N)) + new_col = np.random.default_rng(2).standard_normal(N) + for i in range(K): + df[i] = new_col + expected = DataFrame(np.repeat(new_col, K).reshape(N, K), index=range(N)) + tm.assert_frame_equal(df, expected) + + def test_setitem_different_dtype(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 3)), + index=np.arange(5), + columns=["c", "b", "a"], + ) + df.insert(0, "foo", df["a"]) + df.insert(2, "bar", df["c"]) + + # diff dtype + + # new item + df["x"] = df["a"].astype("float32") + result = df.dtypes + expected = Series( + [np.dtype("float64")] * 5 + [np.dtype("float32")], + index=["foo", "c", "bar", "b", "a", "x"], + ) + tm.assert_series_equal(result, expected) + + # replacing current (in different block) + df["a"] = df["a"].astype("float32") + result = df.dtypes + expected = Series( + [np.dtype("float64")] * 4 + [np.dtype("float32")] * 2, + index=["foo", "c", "bar", "b", "a", "x"], + ) + tm.assert_series_equal(result, expected) + + df["y"] = df["a"].astype("int32") + result = df.dtypes + expected = Series( + [np.dtype("float64")] * 4 + [np.dtype("float32")] * 2 + [np.dtype("int32")], + index=["foo", "c", "bar", "b", "a", "x", "y"], + ) + tm.assert_series_equal(result, expected) + + def test_setitem_overwrite_index(self): + # GH 13522 - assign the index as a column and then overwrite the values + # -> should not affect the index + df = DataFrame(index=["A", "B", "C"]) + df["X"] = df.index + df["X"] = ["x", "y", "z"] + exp = DataFrame( + data={"X": ["x", "y", "z"]}, index=["A", "B", "C"], columns=["X"] + ) + tm.assert_frame_equal(df, exp) + + def test_setitem_empty_columns(self): + # Starting from an empty DataFrame and setting a column should result + # in a default string dtype for the columns' Index + # https://github.com/pandas-dev/pandas/issues/60338 + + df = DataFrame() + df["foo"] = [1, 2, 3] + expected = DataFrame({"foo": [1, 2, 3]}) + tm.assert_frame_equal(df, expected) + + df = DataFrame(columns=Index([])) + df["foo"] = [1, 2, 3] + expected = DataFrame({"foo": [1, 2, 3]}) + tm.assert_frame_equal(df, expected) + + def test_setitem_dt64_index_empty_columns(self): + rng = date_range("1/1/2000 00:00:00", "1/1/2000 1:59:50", freq="10s") + df = DataFrame(index=np.arange(len(rng))) + + df["A"] = rng + assert df["A"].dtype == np.dtype("M8[ns]") + + def test_setitem_timestamp_empty_columns(self): + # GH#19843 + df = DataFrame(index=range(3)) + df["now"] = Timestamp("20130101", tz="UTC").as_unit("ns") + + expected = DataFrame( + [[Timestamp("20130101", tz="UTC")]] * 3, index=range(3), columns=["now"] + ) + tm.assert_frame_equal(df, expected) + + def test_setitem_wrong_length_categorical_dtype_raises(self): + # GH#29523 + cat = Categorical.from_codes([0, 1, 1, 0, 1, 2], ["a", "b", "c"]) + df = DataFrame(range(10), columns=["bar"]) + + msg = ( + rf"Length of values \({len(cat)}\) " + rf"does not match length of index \({len(df)}\)" + ) + with pytest.raises(ValueError, match=msg): + df["foo"] = cat + + def test_setitem_with_sparse_value(self): + # GH#8131 + df = DataFrame({"c_1": ["a", "b", "c"], "n_1": [1.0, 2.0, 3.0]}) + sp_array = SparseArray([0, 0, 1]) + df["new_column"] = sp_array + + expected = Series(sp_array, name="new_column") + tm.assert_series_equal(df["new_column"], expected) + + def test_setitem_with_unaligned_sparse_value(self): + df = DataFrame({"c_1": ["a", "b", "c"], "n_1": [1.0, 2.0, 3.0]}) + sp_series = Series(SparseArray([0, 0, 1]), index=[2, 1, 0]) + + df["new_column"] = sp_series + expected = Series(SparseArray([1, 0, 0]), name="new_column") + tm.assert_series_equal(df["new_column"], expected) + + def test_setitem_period_preserves_dtype(self): + # GH: 26861 + data = [Period("2003-12", "D")] + result = DataFrame([]) + result["a"] = data + + expected = DataFrame({"a": data}, columns=["a"]) + + tm.assert_frame_equal(result, expected) + + def test_setitem_dict_preserves_dtypes(self): + # https://github.com/pandas-dev/pandas/issues/34573 + expected = DataFrame( + { + "a": Series([0, 1, 2], dtype="int64"), + "b": Series([1, 2, 3], dtype=float), + "c": Series([1, 2, 3], dtype=float), + "d": Series([1, 2, 3], dtype="uint32"), + } + ) + df = DataFrame( + { + "a": Series([], dtype="int64"), + "b": Series([], dtype=float), + "c": Series([], dtype=float), + "d": Series([], dtype="uint32"), + } + ) + for idx, b in enumerate([1, 2, 3]): + df.loc[df.shape[0]] = { + "a": int(idx), + "b": float(b), + "c": float(b), + "d": np.uint32(b), + } + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize( + "obj,dtype", + [ + (Period("2020-01"), PeriodDtype("M")), + (Interval(left=0, right=5), IntervalDtype("int64", "right")), + ( + Timestamp("2011-01-01", tz="US/Eastern"), + DatetimeTZDtype(unit="s", tz="US/Eastern"), + ), + ], + ) + def test_setitem_extension_types(self, obj, dtype): + # GH: 34832 + expected = DataFrame({"idx": [1, 2, 3], "obj": Series([obj] * 3, dtype=dtype)}) + + df = DataFrame({"idx": [1, 2, 3]}) + df["obj"] = obj + + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize( + "ea_name", + [ + dtype.name + for dtype in ea_registry.dtypes + # property would require instantiation + if not isinstance(dtype.name, property) + ] + + ["datetime64[ns, UTC]", "period[D]"], + ) + def test_setitem_with_ea_name(self, ea_name): + # GH 38386 + result = DataFrame([0]) + result[ea_name] = [1] + expected = DataFrame({0: [0], ea_name: [1]}) + tm.assert_frame_equal(result, expected) + + def test_setitem_dt64_ndarray_with_NaT_and_diff_time_units(self): + # GH#7492 + data_ns = np.array([1, "nat"], dtype="datetime64[ns]") + result = Series(data_ns).to_frame() + result["new"] = data_ns + expected = DataFrame({0: [1, None], "new": [1, None]}, dtype="datetime64[ns]") + tm.assert_frame_equal(result, expected) + + # OutOfBoundsDatetime error shouldn't occur; as of 2.0 we preserve "M8[s]" + data_s = np.array([1, "nat"], dtype="datetime64[s]") + result["new"] = data_s + tm.assert_series_equal(result[0], expected[0]) + tm.assert_numpy_array_equal(result["new"].to_numpy(), data_s) + + @pytest.mark.parametrize("unit", ["h", "m", "s", "ms", "D", "M", "Y"]) + def test_frame_setitem_datetime64_col_other_units(self, unit): + # Check that non-nano dt64 values get cast to dt64 on setitem + # into a not-yet-existing column + n = 100 + + dtype = np.dtype(f"M8[{unit}]") + vals = np.arange(n, dtype=np.int64).view(dtype) + if unit in ["s", "ms"]: + # supported unit + ex_vals = vals + else: + # we get the nearest supported units, i.e. "s" + ex_vals = vals.astype("datetime64[s]") + + df = DataFrame({"ints": np.arange(n)}, index=np.arange(n)) + df[unit] = vals + + assert df[unit].dtype == ex_vals.dtype + assert (df[unit].values == ex_vals).all() + + @pytest.mark.parametrize("unit", ["h", "m", "s", "ms", "D", "M", "Y"]) + def test_frame_setitem_existing_datetime64_col_other_units(self, unit): + # Check that non-nano dt64 values get cast to dt64 on setitem + # into an already-existing dt64 column + n = 100 + + dtype = np.dtype(f"M8[{unit}]") + vals = np.arange(n, dtype=np.int64).view(dtype) + ex_vals = vals.astype("datetime64[ns]") + + df = DataFrame({"ints": np.arange(n)}, index=np.arange(n)) + df["dates"] = np.arange(n, dtype=np.int64).view("M8[ns]") + + # We overwrite existing dt64 column with new, non-nano dt64 vals + df["dates"] = vals + assert (df["dates"].values == ex_vals).all() + + def test_setitem_dt64tz(self, timezone_frame, using_copy_on_write): + df = timezone_frame + idx = df["B"].rename("foo") + + # setitem + df["C"] = idx + tm.assert_series_equal(df["C"], Series(idx, name="C")) + + df["D"] = "foo" + df["D"] = idx + tm.assert_series_equal(df["D"], Series(idx, name="D")) + del df["D"] + + # assert that A & C are not sharing the same base (e.g. they + # are copies) + # Note: This does not hold with Copy on Write (because of lazy copying) + v1 = df._mgr.arrays[1] + v2 = df._mgr.arrays[2] + tm.assert_extension_array_equal(v1, v2) + v1base = v1._ndarray.base + v2base = v2._ndarray.base + if not using_copy_on_write: + assert v1base is None or (id(v1base) != id(v2base)) + else: + assert id(v1base) == id(v2base) + + # with nan + df2 = df.copy() + df2.iloc[1, 1] = NaT + df2.iloc[1, 2] = NaT + result = df2["B"] + tm.assert_series_equal(notna(result), Series([True, False, True], name="B")) + tm.assert_series_equal(df2.dtypes, df.dtypes) + + def test_setitem_periodindex(self): + rng = period_range("1/1/2000", periods=5, name="index") + df = DataFrame(np.random.default_rng(2).standard_normal((5, 3)), index=rng) + + df["Index"] = rng + rs = Index(df["Index"]) + tm.assert_index_equal(rs, rng, check_names=False) + assert rs.name == "Index" + assert rng.name == "index" + + rs = df.reset_index().set_index("index") + assert isinstance(rs.index, PeriodIndex) + tm.assert_index_equal(rs.index, rng) + + def test_setitem_complete_column_with_array(self): + # GH#37954 + df = DataFrame({"a": ["one", "two", "three"], "b": [1, 2, 3]}) + arr = np.array([[1, 1], [3, 1], [5, 1]]) + df[["c", "d"]] = arr + expected = DataFrame( + { + "a": ["one", "two", "three"], + "b": [1, 2, 3], + "c": [1, 3, 5], + "d": [1, 1, 1], + } + ) + expected["c"] = expected["c"].astype(arr.dtype) + expected["d"] = expected["d"].astype(arr.dtype) + assert expected["c"].dtype == arr.dtype + assert expected["d"].dtype == arr.dtype + tm.assert_frame_equal(df, expected) + + def test_setitem_period_d_dtype(self): + # GH 39763 + rng = period_range("2016-01-01", periods=9, freq="D", name="A") + result = DataFrame(rng) + expected = DataFrame( + {"A": ["NaT", "NaT", "NaT", "NaT", "NaT", "NaT", "NaT", "NaT", "NaT"]}, + dtype="period[D]", + ) + result.iloc[:] = rng._na_value + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("dtype", ["f8", "i8", "u8"]) + def test_setitem_bool_with_numeric_index(self, dtype): + # GH#36319 + cols = Index([1, 2, 3], dtype=dtype) + df = DataFrame(np.random.default_rng(2).standard_normal((3, 3)), columns=cols) + + df[False] = ["a", "b", "c"] + + expected_cols = Index([1, 2, 3, False], dtype=object) + if dtype == "f8": + expected_cols = Index([1.0, 2.0, 3.0, False], dtype=object) + + tm.assert_index_equal(df.columns, expected_cols) + + @pytest.mark.parametrize("indexer", ["B", ["B"]]) + def test_setitem_frame_length_0_str_key(self, indexer): + # GH#38831 + df = DataFrame(columns=["A", "B"]) + other = DataFrame({"B": [1, 2]}) + df[indexer] = other + expected = DataFrame({"A": [np.nan] * 2, "B": [1, 2]}) + expected["A"] = expected["A"].astype("object") + tm.assert_frame_equal(df, expected) + + def test_setitem_frame_duplicate_columns(self): + # GH#15695 + cols = ["A", "B", "C"] * 2 + df = DataFrame(index=range(3), columns=cols) + df.loc[0, "A"] = (0, 3) + df.loc[:, "B"] = (1, 4) + df["C"] = (2, 5) + expected = DataFrame( + [ + [0, 1, 2, 3, 4, 5], + [np.nan, 1, 2, np.nan, 4, 5], + [np.nan, 1, 2, np.nan, 4, 5], + ], + dtype="object", + ) + + # set these with unique columns to be extra-unambiguous + expected[2] = expected[2].astype(np.int64) + expected[5] = expected[5].astype(np.int64) + expected.columns = cols + + tm.assert_frame_equal(df, expected) + + def test_setitem_frame_duplicate_columns_size_mismatch(self): + # GH#39510 + cols = ["A", "B", "C"] * 2 + df = DataFrame(index=range(3), columns=cols) + with pytest.raises(ValueError, match="Columns must be same length as key"): + df[["A"]] = (0, 3, 5) + + df2 = df.iloc[:, :3] # unique columns + with pytest.raises(ValueError, match="Columns must be same length as key"): + df2[["A"]] = (0, 3, 5) + + @pytest.mark.parametrize("cols", [["a", "b", "c"], ["a", "a", "a"]]) + def test_setitem_df_wrong_column_number(self, cols): + # GH#38604 + df = DataFrame([[1, 2, 3]], columns=cols) + rhs = DataFrame([[10, 11]], columns=["d", "e"]) + msg = "Columns must be same length as key" + with pytest.raises(ValueError, match=msg): + df["a"] = rhs + + def test_setitem_listlike_indexer_duplicate_columns(self): + # GH#38604 + df = DataFrame([[1, 2, 3]], columns=["a", "b", "b"]) + rhs = DataFrame([[10, 11, 12]], columns=["a", "b", "b"]) + df[["a", "b"]] = rhs + expected = DataFrame([[10, 11, 12]], columns=["a", "b", "b"]) + tm.assert_frame_equal(df, expected) + + df[["c", "b"]] = rhs + expected = DataFrame([[10, 11, 12, 10]], columns=["a", "b", "b", "c"]) + tm.assert_frame_equal(df, expected) + + def test_setitem_listlike_indexer_duplicate_columns_not_equal_length(self): + # GH#39403 + df = DataFrame([[1, 2, 3]], columns=["a", "b", "b"]) + rhs = DataFrame([[10, 11]], columns=["a", "b"]) + msg = "Columns must be same length as key" + with pytest.raises(ValueError, match=msg): + df[["a", "b"]] = rhs + + def test_setitem_intervals(self): + df = DataFrame({"A": range(10)}) + ser = cut(df["A"], 5) + assert isinstance(ser.cat.categories, IntervalIndex) + + # B & D end up as Categoricals + # the remainder are converted to in-line objects + # containing an IntervalIndex.values + df["B"] = ser + df["C"] = np.array(ser) + df["D"] = ser.values + df["E"] = np.array(ser.values) + df["F"] = ser.astype(object) + + assert isinstance(df["B"].dtype, CategoricalDtype) + assert isinstance(df["B"].cat.categories.dtype, IntervalDtype) + assert isinstance(df["D"].dtype, CategoricalDtype) + assert isinstance(df["D"].cat.categories.dtype, IntervalDtype) + + # These go through the Series constructor and so get inferred back + # to IntervalDtype + assert isinstance(df["C"].dtype, IntervalDtype) + assert isinstance(df["E"].dtype, IntervalDtype) + + # But the Series constructor doesn't do inference on Series objects, + # so setting df["F"] doesn't get cast back to IntervalDtype + assert is_object_dtype(df["F"]) + + # they compare equal as Index + # when converted to numpy objects + c = lambda x: Index(np.array(x)) + tm.assert_index_equal(c(df.B), c(df.B)) + tm.assert_index_equal(c(df.B), c(df.C), check_names=False) + tm.assert_index_equal(c(df.B), c(df.D), check_names=False) + tm.assert_index_equal(c(df.C), c(df.D), check_names=False) + + # B & D are the same Series + tm.assert_series_equal(df["B"], df["B"]) + tm.assert_series_equal(df["B"], df["D"], check_names=False) + + # C & E are the same Series + tm.assert_series_equal(df["C"], df["C"]) + tm.assert_series_equal(df["C"], df["E"], check_names=False) + + def test_setitem_categorical(self): + # GH#35369 + df = DataFrame({"h": Series(list("mn")).astype("category")}) + df.h = df.h.cat.reorder_categories(["n", "m"]) + expected = DataFrame( + {"h": Categorical(["m", "n"]).reorder_categories(["n", "m"])} + ) + tm.assert_frame_equal(df, expected) + + def test_setitem_with_empty_listlike(self): + # GH#17101 + index = Index([], name="idx") + result = DataFrame(columns=["A"], index=index) + result["A"] = [] + expected = DataFrame(columns=["A"], index=index) + tm.assert_index_equal(result.index, expected.index) + + @pytest.mark.parametrize( + "cols, values, expected", + [ + (["C", "D", "D", "a"], [1, 2, 3, 4], 4), # with duplicates + (["D", "C", "D", "a"], [1, 2, 3, 4], 4), # mixed order + (["C", "B", "B", "a"], [1, 2, 3, 4], 4), # other duplicate cols + (["C", "B", "a"], [1, 2, 3], 3), # no duplicates + (["B", "C", "a"], [3, 2, 1], 1), # alphabetical order + (["C", "a", "B"], [3, 2, 1], 2), # in the middle + ], + ) + def test_setitem_same_column(self, cols, values, expected): + # GH#23239 + df = DataFrame([values], columns=cols) + df["a"] = df["a"] + result = df["a"].values[0] + assert result == expected + + def test_setitem_multi_index(self): + # GH#7655, test that assigning to a sub-frame of a frame + # with multi-index columns aligns both rows and columns + it = ["jim", "joe", "jolie"], ["first", "last"], ["left", "center", "right"] + + cols = MultiIndex.from_product(it) + index = date_range("20141006", periods=20) + vals = np.random.default_rng(2).integers(1, 1000, (len(index), len(cols))) + df = DataFrame(vals, columns=cols, index=index) + + i, j = df.index.values.copy(), it[-1][:] + + np.random.default_rng(2).shuffle(i) + df["jim"] = df["jolie"].loc[i, ::-1] + tm.assert_frame_equal(df["jim"], df["jolie"]) + + np.random.default_rng(2).shuffle(j) + df[("joe", "first")] = df[("jolie", "last")].loc[i, j] + tm.assert_frame_equal(df[("joe", "first")], df[("jolie", "last")]) + + np.random.default_rng(2).shuffle(j) + df[("joe", "last")] = df[("jolie", "first")].loc[i, j] + tm.assert_frame_equal(df[("joe", "last")], df[("jolie", "first")]) + + @pytest.mark.parametrize( + "columns,box,expected", + [ + ( + ["A", "B", "C", "D"], + 7, + DataFrame( + [[7, 7, 7, 7], [7, 7, 7, 7], [7, 7, 7, 7]], + columns=["A", "B", "C", "D"], + ), + ), + ( + ["C", "D"], + [7, 8], + DataFrame( + [[1, 2, 7, 8], [3, 4, 7, 8], [5, 6, 7, 8]], + columns=["A", "B", "C", "D"], + ), + ), + ( + ["A", "B", "C"], + np.array([7, 8, 9], dtype=np.int64), + DataFrame([[7, 8, 9], [7, 8, 9], [7, 8, 9]], columns=["A", "B", "C"]), + ), + ( + ["B", "C", "D"], + [[7, 8, 9], [10, 11, 12], [13, 14, 15]], + DataFrame( + [[1, 7, 8, 9], [3, 10, 11, 12], [5, 13, 14, 15]], + columns=["A", "B", "C", "D"], + ), + ), + ( + ["C", "A", "D"], + np.array([[7, 8, 9], [10, 11, 12], [13, 14, 15]], dtype=np.int64), + DataFrame( + [[8, 2, 7, 9], [11, 4, 10, 12], [14, 6, 13, 15]], + columns=["A", "B", "C", "D"], + ), + ), + ( + ["A", "C"], + DataFrame([[7, 8], [9, 10], [11, 12]], columns=["A", "C"]), + DataFrame( + [[7, 2, 8], [9, 4, 10], [11, 6, 12]], columns=["A", "B", "C"] + ), + ), + ], + ) + def test_setitem_list_missing_columns(self, columns, box, expected): + # GH#29334 + df = DataFrame([[1, 2], [3, 4], [5, 6]], columns=["A", "B"]) + df[columns] = box + tm.assert_frame_equal(df, expected) + + def test_setitem_list_of_tuples(self, float_frame): + tuples = list(zip(float_frame["A"], float_frame["B"])) + float_frame["tuples"] = tuples + + result = float_frame["tuples"] + expected = Series(tuples, index=float_frame.index, name="tuples") + tm.assert_series_equal(result, expected) + + def test_setitem_iloc_generator(self): + # GH#39614 + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + indexer = (x for x in [1, 2]) + df.iloc[indexer] = 1 + expected = DataFrame({"a": [1, 1, 1], "b": [4, 1, 1]}) + tm.assert_frame_equal(df, expected) + + def test_setitem_iloc_two_dimensional_generator(self): + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + indexer = (x for x in [1, 2]) + df.iloc[indexer, 1] = 1 + expected = DataFrame({"a": [1, 2, 3], "b": [4, 1, 1]}) + tm.assert_frame_equal(df, expected) + + def test_setitem_dtypes_bytes_type_to_object(self): + # GH 20734 + index = Series(name="id", dtype="S24") + df = DataFrame(index=index, columns=Index([], dtype="str")) + df["a"] = Series(name="a", index=index, dtype=np.uint32) + df["b"] = Series(name="b", index=index, dtype="S64") + df["c"] = Series(name="c", index=index, dtype="S64") + df["d"] = Series(name="d", index=index, dtype=np.uint8) + result = df.dtypes + expected = Series([np.uint32, object, object, np.uint8], index=list("abcd")) + tm.assert_series_equal(result, expected) + + def test_boolean_mask_nullable_int64(self): + # GH 28928 + result = DataFrame({"a": [3, 4], "b": [5, 6]}).astype( + {"a": "int64", "b": "Int64"} + ) + mask = Series(False, index=result.index) + result.loc[mask, "a"] = result["a"] + result.loc[mask, "b"] = result["b"] + expected = DataFrame({"a": [3, 4], "b": [5, 6]}).astype( + {"a": "int64", "b": "Int64"} + ) + tm.assert_frame_equal(result, expected) + + def test_setitem_ea_dtype_rhs_series(self): + # GH#47425 + df = DataFrame({"a": [1, 2]}) + df["a"] = Series([1, 2], dtype="Int64") + expected = DataFrame({"a": [1, 2]}, dtype="Int64") + tm.assert_frame_equal(df, expected) + + # TODO(ArrayManager) set column with 2d column array, see #44788 + @td.skip_array_manager_not_yet_implemented + def test_setitem_npmatrix_2d(self): + # GH#42376 + # for use-case df["x"] = sparse.random((10, 10)).mean(axis=1) + expected = DataFrame( + {"np-array": np.ones(10), "np-matrix": np.ones(10)}, index=np.arange(10) + ) + + a = np.ones((10, 1)) + df = DataFrame(index=np.arange(10), columns=Index([], dtype="str")) + df["np-array"] = a + + # Instantiation of `np.matrix` gives PendingDeprecationWarning + with tm.assert_produces_warning(PendingDeprecationWarning): + df["np-matrix"] = np.matrix(a) + + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize("vals", [{}, {"d": "a"}]) + def test_setitem_aligning_dict_with_index(self, vals): + # GH#47216 + df = DataFrame({"a": [1, 2], "b": [3, 4], **vals}) + df.loc[:, "a"] = {1: 100, 0: 200} + df.loc[:, "c"] = {0: 5, 1: 6} + df.loc[:, "e"] = {1: 5} + expected = DataFrame( + {"a": [200, 100], "b": [3, 4], **vals, "c": [5, 6], "e": [np.nan, 5]} + ) + tm.assert_frame_equal(df, expected) + + def test_setitem_rhs_dataframe(self): + # GH#47578 + df = DataFrame({"a": [1, 2]}) + df["a"] = DataFrame({"a": [10, 11]}, index=[1, 2]) + expected = DataFrame({"a": [np.nan, 10]}) + tm.assert_frame_equal(df, expected) + + df = DataFrame({"a": [1, 2]}) + df.isetitem(0, DataFrame({"a": [10, 11]}, index=[1, 2])) + tm.assert_frame_equal(df, expected) + + def test_setitem_frame_overwrite_with_ea_dtype(self, any_numeric_ea_dtype): + # GH#46896 + df = DataFrame(columns=["a", "b"], data=[[1, 2], [3, 4]]) + df["a"] = DataFrame({"a": [10, 11]}, dtype=any_numeric_ea_dtype) + expected = DataFrame( + { + "a": Series([10, 11], dtype=any_numeric_ea_dtype), + "b": [2, 4], + } + ) + tm.assert_frame_equal(df, expected) + + def test_setitem_string_option_object_index(self): + # GH#55638 + pytest.importorskip("pyarrow") + df = DataFrame({"a": [1, 2]}) + with pd.option_context("future.infer_string", True): + df["b"] = Index(["a", "b"], dtype=object) + expected = DataFrame({"a": [1, 2], "b": Series(["a", "b"], dtype=object)}) + tm.assert_frame_equal(df, expected) + + def test_setitem_frame_midx_columns(self): + # GH#49121 + df = DataFrame({("a", "b"): [10]}) + expected = df.copy() + col_name = ("a", "b") + df[col_name] = df[[col_name]] + tm.assert_frame_equal(df, expected) + + def test_loc_setitem_ea_dtype(self): + # GH#55604 + df = DataFrame({"a": np.array([10], dtype="i8")}) + df.loc[:, "a"] = Series([11], dtype="Int64") + expected = DataFrame({"a": np.array([11], dtype="i8")}) + tm.assert_frame_equal(df, expected) + + df = DataFrame({"a": np.array([10], dtype="i8")}) + df.iloc[:, 0] = Series([11], dtype="Int64") + tm.assert_frame_equal(df, expected) + + def test_setitem_object_inferring(self): + # GH#56102 + idx = Index([Timestamp("2019-12-31")], dtype=object) + df = DataFrame({"a": [1]}) + with tm.assert_produces_warning(FutureWarning, match="infer"): + df.loc[:, "b"] = idx + with tm.assert_produces_warning(FutureWarning, match="infer"): + df["c"] = idx + + expected = DataFrame( + { + "a": [1], + "b": Series([Timestamp("2019-12-31")], dtype="datetime64[ns]"), + "c": Series([Timestamp("2019-12-31")], dtype="datetime64[ns]"), + } + ) + tm.assert_frame_equal(df, expected) + + +class TestSetitemTZAwareValues: + @pytest.fixture + def idx(self): + naive = DatetimeIndex(["2013-1-1 13:00", "2013-1-2 14:00"], name="B") + idx = naive.tz_localize("US/Pacific") + return idx + + @pytest.fixture + def expected(self, idx): + expected = Series(np.array(idx.tolist(), dtype="object"), name="B") + assert expected.dtype == idx.dtype + return expected + + def test_setitem_dt64series(self, idx, expected): + # convert to utc + df = DataFrame(np.random.default_rng(2).standard_normal((2, 1)), columns=["A"]) + df["B"] = idx + df["B"] = idx.to_series(index=[0, 1]).dt.tz_convert(None) + + result = df["B"] + comp = Series(idx.tz_convert("UTC").tz_localize(None), name="B") + tm.assert_series_equal(result, comp) + + def test_setitem_datetimeindex(self, idx, expected): + # setting a DataFrame column with a tzaware DTI retains the dtype + df = DataFrame(np.random.default_rng(2).standard_normal((2, 1)), columns=["A"]) + + # assign to frame + df["B"] = idx + result = df["B"] + tm.assert_series_equal(result, expected) + + def test_setitem_object_array_of_tzaware_datetimes(self, idx, expected): + # setting a DataFrame column with a tzaware DTI retains the dtype + df = DataFrame(np.random.default_rng(2).standard_normal((2, 1)), columns=["A"]) + + # object array of datetimes with a tz + df["B"] = idx.to_pydatetime() + result = df["B"] + tm.assert_series_equal(result, expected) + + +class TestDataFrameSetItemWithExpansion: + def test_setitem_listlike_views(self, using_copy_on_write, warn_copy_on_write): + # GH#38148 + df = DataFrame({"a": [1, 2, 3], "b": [4, 4, 6]}) + + # get one column as a view of df + ser = df["a"] + + # add columns with list-like indexer + df[["c", "d"]] = np.array([[0.1, 0.2], [0.3, 0.4], [0.4, 0.5]]) + + # edit in place the first column to check view semantics + with tm.assert_cow_warning(warn_copy_on_write): + df.iloc[0, 0] = 100 + + if using_copy_on_write: + expected = Series([1, 2, 3], name="a") + else: + expected = Series([100, 2, 3], name="a") + tm.assert_series_equal(ser, expected) + + def test_setitem_string_column_numpy_dtype_raising(self): + # GH#39010 + df = DataFrame([[1, 2], [3, 4]]) + df["0 - Name"] = [5, 6] + expected = DataFrame([[1, 2, 5], [3, 4, 6]], columns=[0, 1, "0 - Name"]) + tm.assert_frame_equal(df, expected) + + def test_setitem_empty_df_duplicate_columns(self, using_copy_on_write): + # GH#38521 + df = DataFrame(columns=["a", "b", "b"], dtype="float64") + df.loc[:, "a"] = list(range(2)) + expected = DataFrame( + [[0, np.nan, np.nan], [1, np.nan, np.nan]], columns=["a", "b", "b"] + ) + tm.assert_frame_equal(df, expected) + + def test_setitem_with_expansion_categorical_dtype(self): + # assignment + df = DataFrame( + { + "value": np.array( + np.random.default_rng(2).integers(0, 10000, 100), dtype="int32" + ) + } + ) + labels = Categorical([f"{i} - {i + 499}" for i in range(0, 10000, 500)]) + + df = df.sort_values(by=["value"], ascending=True) + ser = cut(df.value, range(0, 10500, 500), right=False, labels=labels) + cat = ser.values + + # setting with a Categorical + df["D"] = cat + result = df.dtypes + expected = Series( + [np.dtype("int32"), CategoricalDtype(categories=labels, ordered=False)], + index=["value", "D"], + ) + tm.assert_series_equal(result, expected) + + # setting with a Series + df["E"] = ser + result = df.dtypes + expected = Series( + [ + np.dtype("int32"), + CategoricalDtype(categories=labels, ordered=False), + CategoricalDtype(categories=labels, ordered=False), + ], + index=["value", "D", "E"], + ) + tm.assert_series_equal(result, expected) + + result1 = df["D"] + result2 = df["E"] + tm.assert_categorical_equal(result1._mgr.array, cat) + + # sorting + ser.name = "E" + tm.assert_series_equal(result2.sort_index(), ser.sort_index()) + + def test_setitem_scalars_no_index(self): + # GH#16823 / GH#17894 + df = DataFrame() + df["foo"] = 1 + expected = DataFrame(columns=["foo"]).astype(np.int64) + tm.assert_frame_equal(df, expected) + + def test_setitem_newcol_tuple_key(self, float_frame): + assert ( + "A", + "B", + ) not in float_frame.columns + float_frame["A", "B"] = float_frame["A"] + assert ("A", "B") in float_frame.columns + + result = float_frame["A", "B"] + expected = float_frame["A"] + tm.assert_series_equal(result, expected, check_names=False) + + def test_frame_setitem_newcol_timestamp(self): + # GH#2155 + columns = date_range(start="1/1/2012", end="2/1/2012", freq=BDay()) + data = DataFrame(columns=columns, index=range(10)) + t = datetime(2012, 11, 1) + ts = Timestamp(t) + data[ts] = np.nan # works, mostly a smoke-test + assert np.isnan(data[ts]).all() + + def test_frame_setitem_rangeindex_into_new_col(self): + # GH#47128 + df = DataFrame({"a": ["a", "b"]}) + df["b"] = df.index + df.loc[[False, True], "b"] = 100 + result = df.loc[[1], :] + expected = DataFrame({"a": ["b"], "b": [100]}, index=[1]) + tm.assert_frame_equal(result, expected) + + def test_setitem_frame_keep_ea_dtype(self, any_numeric_ea_dtype): + # GH#46896 + df = DataFrame(columns=["a", "b"], data=[[1, 2], [3, 4]]) + df["c"] = DataFrame({"a": [10, 11]}, dtype=any_numeric_ea_dtype) + expected = DataFrame( + { + "a": [1, 3], + "b": [2, 4], + "c": Series([10, 11], dtype=any_numeric_ea_dtype), + } + ) + tm.assert_frame_equal(df, expected) + + def test_loc_expansion_with_timedelta_type(self): + result = DataFrame(columns=list("abc")) + result.loc[0] = { + "a": pd.to_timedelta(5, unit="s"), + "b": pd.to_timedelta(72, unit="s"), + "c": "23", + } + expected = DataFrame( + [[pd.Timedelta("0 days 00:00:05"), pd.Timedelta("0 days 00:01:12"), "23"]], + index=Index([0]), + columns=(["a", "b", "c"]), + ) + tm.assert_frame_equal(result, expected) + + +class TestDataFrameSetItemSlicing: + def test_setitem_slice_position(self): + # GH#31469 + df = DataFrame(np.zeros((100, 1))) + df[-4:] = 1 + arr = np.zeros((100, 1)) + arr[-4:] = 1 + expected = DataFrame(arr) + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize("indexer", [tm.setitem, tm.iloc]) + @pytest.mark.parametrize("box", [Series, np.array, list, pd.array]) + @pytest.mark.parametrize("n", [1, 2, 3]) + def test_setitem_slice_indexer_broadcasting_rhs(self, n, box, indexer): + # GH#40440 + df = DataFrame([[1, 3, 5]] + [[2, 4, 6]] * n, columns=["a", "b", "c"]) + indexer(df)[1:] = box([10, 11, 12]) + expected = DataFrame([[1, 3, 5]] + [[10, 11, 12]] * n, columns=["a", "b", "c"]) + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize("box", [Series, np.array, list, pd.array]) + @pytest.mark.parametrize("n", [1, 2, 3]) + def test_setitem_list_indexer_broadcasting_rhs(self, n, box): + # GH#40440 + df = DataFrame([[1, 3, 5]] + [[2, 4, 6]] * n, columns=["a", "b", "c"]) + df.iloc[list(range(1, n + 1))] = box([10, 11, 12]) + expected = DataFrame([[1, 3, 5]] + [[10, 11, 12]] * n, columns=["a", "b", "c"]) + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize("indexer", [tm.setitem, tm.iloc]) + @pytest.mark.parametrize("box", [Series, np.array, list, pd.array]) + @pytest.mark.parametrize("n", [1, 2, 3]) + def test_setitem_slice_broadcasting_rhs_mixed_dtypes(self, n, box, indexer): + # GH#40440 + df = DataFrame( + [[1, 3, 5], ["x", "y", "z"]] + [[2, 4, 6]] * n, columns=["a", "b", "c"] + ) + indexer(df)[1:] = box([10, 11, 12]) + expected = DataFrame( + [[1, 3, 5]] + [[10, 11, 12]] * (n + 1), + columns=["a", "b", "c"], + dtype="object", + ) + tm.assert_frame_equal(df, expected) + + +class TestDataFrameSetItemCallable: + def test_setitem_callable(self): + # GH#12533 + df = DataFrame({"A": [1, 2, 3, 4], "B": [5, 6, 7, 8]}) + df[lambda x: "A"] = [11, 12, 13, 14] + + exp = DataFrame({"A": [11, 12, 13, 14], "B": [5, 6, 7, 8]}) + tm.assert_frame_equal(df, exp) + + def test_setitem_other_callable(self): + # GH#13299 + def inc(x): + return x + 1 + + # Set dtype object straight away to avoid upcast when setting inc below + df = DataFrame([[-1, 1], [1, -1]], dtype=object) + df[df > 0] = inc + + expected = DataFrame([[-1, inc], [inc, -1]]) + tm.assert_frame_equal(df, expected) + + +class TestDataFrameSetItemBooleanMask: + @td.skip_array_manager_invalid_test # TODO(ArrayManager) rewrite not using .values + @pytest.mark.parametrize( + "mask_type", + [lambda df: df > np.abs(df) / 2, lambda df: (df > np.abs(df) / 2).values], + ids=["dataframe", "array"], + ) + def test_setitem_boolean_mask(self, mask_type, float_frame): + # Test for issue #18582 + df = float_frame.copy() + mask = mask_type(df) + + # index with boolean mask + result = df.copy() + result[mask] = np.nan + + expected = df.values.copy() + expected[np.array(mask)] = np.nan + expected = DataFrame(expected, index=df.index, columns=df.columns) + tm.assert_frame_equal(result, expected) + + @pytest.mark.xfail(reason="Currently empty indexers are treated as all False") + @pytest.mark.parametrize("box", [list, np.array, Series]) + def test_setitem_loc_empty_indexer_raises_with_non_empty_value(self, box): + # GH#37672 + df = DataFrame({"a": ["a"], "b": [1], "c": [1]}) + if box == Series: + indexer = box([], dtype="object") + else: + indexer = box([]) + msg = "Must have equal len keys and value when setting with an iterable" + with pytest.raises(ValueError, match=msg): + df.loc[indexer, ["b"]] = [1] + + @pytest.mark.parametrize("box", [list, np.array, Series]) + def test_setitem_loc_only_false_indexer_dtype_changed(self, box): + # GH#37550 + # Dtype is only changed when value to set is a Series and indexer is + # empty/bool all False + df = DataFrame({"a": ["a"], "b": [1], "c": [1]}) + indexer = box([False]) + df.loc[indexer, ["b"]] = 10 - df["c"] + expected = DataFrame({"a": ["a"], "b": [1], "c": [1]}) + tm.assert_frame_equal(df, expected) + + df.loc[indexer, ["b"]] = 9 + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize("indexer", [tm.setitem, tm.loc]) + def test_setitem_boolean_mask_aligning(self, indexer): + # GH#39931 + df = DataFrame({"a": [1, 4, 2, 3], "b": [5, 6, 7, 8]}) + expected = df.copy() + mask = df["a"] >= 3 + indexer(df)[mask] = indexer(df)[mask].sort_values("a") + tm.assert_frame_equal(df, expected) + + def test_setitem_mask_categorical(self): + # assign multiple rows (mixed values) (-> array) -> exp_multi_row + # changed multiple rows + cats2 = Categorical(["a", "a", "b", "b", "a", "a", "a"], categories=["a", "b"]) + idx2 = Index(["h", "i", "j", "k", "l", "m", "n"]) + values2 = [1, 1, 2, 2, 1, 1, 1] + exp_multi_row = DataFrame({"cats": cats2, "values": values2}, index=idx2) + + catsf = Categorical( + ["a", "a", "c", "c", "a", "a", "a"], categories=["a", "b", "c"] + ) + idxf = Index(["h", "i", "j", "k", "l", "m", "n"]) + valuesf = [1, 1, 3, 3, 1, 1, 1] + df = DataFrame({"cats": catsf, "values": valuesf}, index=idxf) + + exp_fancy = exp_multi_row.copy() + exp_fancy["cats"] = exp_fancy["cats"].cat.set_categories(["a", "b", "c"]) + + mask = df["cats"] == "c" + df[mask] = ["b", 2] + # category c is kept in .categories + tm.assert_frame_equal(df, exp_fancy) + + @pytest.mark.parametrize("dtype", ["float", "int64"]) + @pytest.mark.parametrize("kwargs", [{}, {"index": [1]}, {"columns": ["A"]}]) + def test_setitem_empty_frame_with_boolean(self, dtype, kwargs): + # see GH#10126 + kwargs["dtype"] = dtype + df = DataFrame(**kwargs) + + df2 = df.copy() + df[df > df2] = 47 + tm.assert_frame_equal(df, df2) + + def test_setitem_boolean_indexing(self): + idx = list(range(3)) + cols = ["A", "B", "C"] + df1 = DataFrame( + index=idx, + columns=cols, + data=np.array( + [[0.0, 0.5, 1.0], [1.5, 2.0, 2.5], [3.0, 3.5, 4.0]], dtype=float + ), + ) + df2 = DataFrame(index=idx, columns=cols, data=np.ones((len(idx), len(cols)))) + + expected = DataFrame( + index=idx, + columns=cols, + data=np.array([[0.0, 0.5, 1.0], [1.5, 2.0, -1], [-1, -1, -1]], dtype=float), + ) + + df1[df1 > 2.0 * df2] = -1 + tm.assert_frame_equal(df1, expected) + with pytest.raises(ValueError, match="Item wrong length"): + df1[df1.index[:-1] > 2] = -1 + + def test_loc_setitem_all_false_boolean_two_blocks(self): + # GH#40885 + df = DataFrame({"a": [1, 2], "b": [3, 4], "c": "a"}) + expected = df.copy() + indexer = Series([False, False], name="c") + df.loc[indexer, ["b"]] = DataFrame({"b": [5, 6]}, index=[0, 1]) + tm.assert_frame_equal(df, expected) + + def test_setitem_ea_boolean_mask(self): + # GH#47125 + df = DataFrame([[-1, 2], [3, -4]]) + expected = DataFrame([[0, 2], [3, 0]]) + boolean_indexer = DataFrame( + { + 0: Series([True, False], dtype="boolean"), + 1: Series([pd.NA, True], dtype="boolean"), + } + ) + df[boolean_indexer] = 0 + tm.assert_frame_equal(df, expected) + + +class TestDataFrameSetitemCopyViewSemantics: + def test_setitem_always_copy(self, float_frame): + assert "E" not in float_frame.columns + s = float_frame["A"].copy() + float_frame["E"] = s + + float_frame.iloc[5:10, float_frame.columns.get_loc("E")] = np.nan + assert notna(s[5:10]).all() + + @pytest.mark.parametrize("consolidate", [True, False]) + def test_setitem_partial_column_inplace( + self, consolidate, using_array_manager, using_copy_on_write + ): + # This setting should be in-place, regardless of whether frame is + # single-block or multi-block + # GH#304 this used to be incorrectly not-inplace, in which case + # we needed to ensure _item_cache was cleared. + + df = DataFrame( + {"x": [1.1, 2.1, 3.1, 4.1], "y": [5.1, 6.1, 7.1, 8.1]}, index=[0, 1, 2, 3] + ) + df.insert(2, "z", np.nan) + if not using_array_manager: + if consolidate: + df._consolidate_inplace() + assert len(df._mgr.blocks) == 1 + else: + assert len(df._mgr.blocks) == 2 + + zvals = df["z"]._values + + df.loc[2:, "z"] = 42 + + expected = Series([np.nan, np.nan, 42, 42], index=df.index, name="z") + tm.assert_series_equal(df["z"], expected) + + # check setting occurred in-place + if not using_copy_on_write: + tm.assert_numpy_array_equal(zvals, expected.values) + assert np.shares_memory(zvals, df["z"]._values) + + def test_setitem_duplicate_columns_not_inplace(self): + # GH#39510 + cols = ["A", "B"] * 2 + df = DataFrame(0.0, index=[0], columns=cols) + df_copy = df.copy() + df_view = df[:] + df["B"] = (2, 5) + + expected = DataFrame([[0.0, 2, 0.0, 5]], columns=cols) + tm.assert_frame_equal(df_view, df_copy) + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize( + "value", [1, np.array([[1], [1]], dtype="int64"), [[1], [1]]] + ) + def test_setitem_same_dtype_not_inplace(self, value, using_array_manager): + # GH#39510 + cols = ["A", "B"] + df = DataFrame(0, index=[0, 1], columns=cols) + df_copy = df.copy() + df_view = df[:] + df[["B"]] = value + + expected = DataFrame([[0, 1], [0, 1]], columns=cols) + tm.assert_frame_equal(df, expected) + tm.assert_frame_equal(df_view, df_copy) + + @pytest.mark.parametrize("value", [1.0, np.array([[1.0], [1.0]]), [[1.0], [1.0]]]) + def test_setitem_listlike_key_scalar_value_not_inplace(self, value): + # GH#39510 + cols = ["A", "B"] + df = DataFrame(0, index=[0, 1], columns=cols) + df_copy = df.copy() + df_view = df[:] + df[["B"]] = value + + expected = DataFrame([[0, 1.0], [0, 1.0]], columns=cols) + tm.assert_frame_equal(df_view, df_copy) + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize( + "indexer", + [ + "a", + ["a"], + pytest.param( + [True, False], + marks=pytest.mark.xfail( + reason="Boolean indexer incorrectly setting inplace", + strict=False, # passing on some builds, no obvious pattern + ), + ), + ], + ) + @pytest.mark.parametrize( + "value, set_value", + [ + (1, 5), + (1.0, 5.0), + (Timestamp("2020-12-31"), Timestamp("2021-12-31")), + ("a", "b"), + ], + ) + def test_setitem_not_operating_inplace(self, value, set_value, indexer): + # GH#43406 + df = DataFrame({"a": value}, index=[0, 1]) + expected = df.copy() + view = df[:] + df[indexer] = set_value + tm.assert_frame_equal(view, expected) + + @td.skip_array_manager_invalid_test + def test_setitem_column_update_inplace( + self, using_copy_on_write, warn_copy_on_write + ): + # https://github.com/pandas-dev/pandas/issues/47172 + + labels = [f"c{i}" for i in range(10)] + df = DataFrame({col: np.zeros(len(labels)) for col in labels}, index=labels) + values = df._mgr.blocks[0].values + + with tm.raises_chained_assignment_error(): + for label in df.columns: + df[label][label] = 1 + if not using_copy_on_write: + # diagonal values all updated + assert np.all(values[np.arange(10), np.arange(10)] == 1) + else: + # original dataframe not updated + assert np.all(values[np.arange(10), np.arange(10)] == 0) + + def test_setitem_column_frame_as_category(self): + # GH31581 + df = DataFrame([1, 2, 3]) + df["col1"] = DataFrame([1, 2, 3], dtype="category") + df["col2"] = Series([1, 2, 3], dtype="category") + + expected_types = Series( + ["int64", "category", "category"], index=[0, "col1", "col2"], dtype=object + ) + tm.assert_series_equal(df.dtypes, expected_types) + + @pytest.mark.parametrize("dtype", ["int64", "Int64"]) + def test_setitem_iloc_with_numpy_array(self, dtype): + # GH-33828 + df = DataFrame({"a": np.ones(3)}, dtype=dtype) + df.iloc[np.array([0]), np.array([0])] = np.array([[2]]) + + expected = DataFrame({"a": [2, 1, 1]}, dtype=dtype) + tm.assert_frame_equal(df, expected) + + def test_setitem_frame_dup_cols_dtype(self): + # GH#53143 + df = DataFrame([[1, 2, 3, 4], [4, 5, 6, 7]], columns=["a", "b", "a", "c"]) + rhs = DataFrame([[0, 1.5], [2, 2.5]], columns=["a", "a"]) + df["a"] = rhs + expected = DataFrame( + [[0, 2, 1.5, 4], [2, 5, 2.5, 7]], columns=["a", "b", "a", "c"] + ) + tm.assert_frame_equal(df, expected) + + df = DataFrame([[1, 2, 3], [4, 5, 6]], columns=["a", "a", "b"]) + rhs = DataFrame([[0, 1.5], [2, 2.5]], columns=["a", "a"]) + df["a"] = rhs + expected = DataFrame([[0, 1.5, 3], [2, 2.5, 6]], columns=["a", "a", "b"]) + tm.assert_frame_equal(df, expected) + + def test_frame_setitem_empty_dataframe(self): + # GH#28871 + dti = DatetimeIndex(["2000-01-01"], dtype="M8[ns]", name="date") + df = DataFrame({"date": dti}).set_index("date") + df = df[0:0].copy() + + df["3010"] = None + df["2010"] = None + + expected = DataFrame( + [], + columns=["3010", "2010"], + index=dti[:0], + ) + tm.assert_frame_equal(df, expected) + + def test_iloc_setitem_view_2dblock(self, using_copy_on_write, warn_copy_on_write): + # https://github.com/pandas-dev/pandas/issues/60309 + df_parent = DataFrame( + { + "A": [1, 4, 1, 5], + "B": [2, 5, 2, 6], + "C": [3, 6, 1, 7], + "D": [8, 9, 10, 11], + } + ) + df_orig = df_parent.copy() + df = df_parent[["B", "C"]] + + # Perform the iloc operation + if using_copy_on_write: + df.iloc[[1, 3], :] = [[2, 2], [2, 2]] + + # Check that original DataFrame is unchanged + tm.assert_frame_equal(df_parent, df_orig) + elif warn_copy_on_write: + # TODO(COW): should this warn? + # with tm.assert_cow_warning(warn_copy_on_write): + df.iloc[[1, 3], :] = [[2, 2], [2, 2]] + else: + with pd.option_context("chained_assignment", "warn"): + with tm.assert_produces_warning(SettingWithCopyWarning): + df.iloc[[1, 3], :] = [[2, 2], [2, 2]] + + # Check that df is modified correctly + expected = DataFrame({"B": [2, 2, 2, 2], "C": [3, 2, 1, 2]}, index=df.index) + tm.assert_frame_equal(df, expected) + + # with setting to subset of columns + df = df_parent[["B", "C", "D"]] + if using_copy_on_write or warn_copy_on_write: + df.iloc[[1, 3], 0:3:2] = [[2, 2], [2, 2]] + tm.assert_frame_equal(df_parent, df_orig) + else: + with pd.option_context("chained_assignment", "warn"): + with tm.assert_produces_warning(SettingWithCopyWarning): + df.iloc[[1, 3], 0:3:2] = [[2, 2], [2, 2]] + + expected = DataFrame( + {"B": [2, 2, 2, 2], "C": [3, 6, 1, 7], "D": [8, 2, 10, 2]}, index=df.index + ) + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize( + "indexer, value", + [ + (([0, 2], slice(None)), [[2, 2, 2, 2], [2, 2, 2, 2]]), + ((slice(None), slice(None)), 2), + ((0, [1, 3]), [2, 2]), + (([0], 1), [2]), + (([0], np.int64(1)), [2]), + ((slice(None), np.int64(1)), [2, 2, 2]), + ((slice(None, 2), np.int64(1)), [2, 2]), + ( + (np.array([False, True, False]), np.array([False, True, False, True])), + [2, 2], + ), + ], + ) + def test_setitem_2dblock_with_ref( + self, indexer, value, using_copy_on_write, warn_copy_on_write + ): + # https://github.com/pandas-dev/pandas/issues/60309 + arr = np.arange(12).reshape(3, 4) + + df_parent = DataFrame(arr.copy(), columns=list("ABCD")) + # the test is specifically for the case where the df is backed by a single + # block (taking the non-split path) + assert df_parent._mgr.is_single_block + df_orig = df_parent.copy() + df = df_parent[:] + + with tm.assert_cow_warning(warn_copy_on_write): + df.iloc[indexer] = value + + # Check that original DataFrame is unchanged + if using_copy_on_write: + tm.assert_frame_equal(df_parent, df_orig) + + # Check that df is modified correctly + arr[indexer] = value + expected = DataFrame(arr, columns=list("ABCD")) + tm.assert_frame_equal(df, expected) + + +def test_full_setter_loc_incompatible_dtype(): + # https://github.com/pandas-dev/pandas/issues/55791 + df = DataFrame({"a": [1, 2]}) + with tm.assert_produces_warning(FutureWarning, match="incompatible dtype"): + df.loc[:, "a"] = True + expected = DataFrame({"a": [True, True]}) + tm.assert_frame_equal(df, expected) + + df = DataFrame({"a": [1, 2]}) + with tm.assert_produces_warning(FutureWarning, match="incompatible dtype"): + df.loc[:, "a"] = {0: 3.5, 1: 4.5} + expected = DataFrame({"a": [3.5, 4.5]}) + tm.assert_frame_equal(df, expected) + + df = DataFrame({"a": [1, 2]}) + df.loc[:, "a"] = {0: 3, 1: 4} + expected = DataFrame({"a": [3, 4]}) + tm.assert_frame_equal(df, expected) + + +def test_setitem_partial_row_multiple_columns(): + # https://github.com/pandas-dev/pandas/issues/56503 + df = DataFrame({"A": [1, 2, 3], "B": [4.0, 5, 6]}) + # should not warn + df.loc[df.index <= 1, ["F", "G"]] = (1, "abc") + expected = DataFrame( + { + "A": [1, 2, 3], + "B": [4.0, 5, 6], + "F": [1.0, 1, float("nan")], + "G": ["abc", "abc", float("nan")], + } + ) + tm.assert_frame_equal(df, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_take.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_take.py new file mode 100644 index 0000000000000000000000000000000000000000..8c172314409171bc102e599bb26ca0d1e0b12078 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_take.py @@ -0,0 +1,92 @@ +import pytest + +import pandas._testing as tm + + +class TestDataFrameTake: + def test_take_slices_deprecated(self, float_frame): + # GH#51539 + df = float_frame + + slc = slice(0, 4, 1) + with tm.assert_produces_warning(FutureWarning): + df.take(slc, axis=0) + with tm.assert_produces_warning(FutureWarning): + df.take(slc, axis=1) + + def test_take(self, float_frame): + # homogeneous + order = [3, 1, 2, 0] + for df in [float_frame]: + result = df.take(order, axis=0) + expected = df.reindex(df.index.take(order)) + tm.assert_frame_equal(result, expected) + + # axis = 1 + result = df.take(order, axis=1) + expected = df.loc[:, ["D", "B", "C", "A"]] + tm.assert_frame_equal(result, expected, check_names=False) + + # negative indices + order = [2, 1, -1] + for df in [float_frame]: + result = df.take(order, axis=0) + expected = df.reindex(df.index.take(order)) + tm.assert_frame_equal(result, expected) + + result = df.take(order, axis=0) + tm.assert_frame_equal(result, expected) + + # axis = 1 + result = df.take(order, axis=1) + expected = df.loc[:, ["C", "B", "D"]] + tm.assert_frame_equal(result, expected, check_names=False) + + # illegal indices + msg = "indices are out-of-bounds" + with pytest.raises(IndexError, match=msg): + df.take([3, 1, 2, 30], axis=0) + with pytest.raises(IndexError, match=msg): + df.take([3, 1, 2, -31], axis=0) + with pytest.raises(IndexError, match=msg): + df.take([3, 1, 2, 5], axis=1) + with pytest.raises(IndexError, match=msg): + df.take([3, 1, 2, -5], axis=1) + + def test_take_mixed_type(self, float_string_frame): + # mixed-dtype + order = [4, 1, 2, 0, 3] + for df in [float_string_frame]: + result = df.take(order, axis=0) + expected = df.reindex(df.index.take(order)) + tm.assert_frame_equal(result, expected) + + # axis = 1 + result = df.take(order, axis=1) + expected = df.loc[:, ["foo", "B", "C", "A", "D"]] + tm.assert_frame_equal(result, expected) + + # negative indices + order = [4, 1, -2] + for df in [float_string_frame]: + result = df.take(order, axis=0) + expected = df.reindex(df.index.take(order)) + tm.assert_frame_equal(result, expected) + + # axis = 1 + result = df.take(order, axis=1) + expected = df.loc[:, ["foo", "B", "D"]] + tm.assert_frame_equal(result, expected) + + def test_take_mixed_numeric(self, mixed_float_frame, mixed_int_frame): + # by dtype + order = [1, 2, 0, 3] + for df in [mixed_float_frame, mixed_int_frame]: + result = df.take(order, axis=0) + expected = df.reindex(df.index.take(order)) + tm.assert_frame_equal(result, expected) + + # axis = 1 + result = df.take(order, axis=1) + expected = df.loc[:, ["B", "C", "A", "D"]] + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_where.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_where.py new file mode 100644 index 0000000000000000000000000000000000000000..356257bbfec9804336159becf86212d2afeeed0d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_where.py @@ -0,0 +1,1104 @@ +from datetime import datetime + +from hypothesis import given +import numpy as np +import pytest + +from pandas.core.dtypes.common import is_scalar + +import pandas as pd +from pandas import ( + DataFrame, + DatetimeIndex, + Index, + Series, + StringDtype, + Timestamp, + date_range, + isna, +) +import pandas._testing as tm +from pandas._testing._hypothesis import OPTIONAL_ONE_OF_ALL + + +@pytest.fixture(params=["default", "float_string", "mixed_float", "mixed_int"]) +def where_frame(request, float_string_frame, mixed_float_frame, mixed_int_frame): + if request.param == "default": + return DataFrame( + np.random.default_rng(2).standard_normal((5, 3)), columns=["A", "B", "C"] + ) + if request.param == "float_string": + return float_string_frame + if request.param == "mixed_float": + return mixed_float_frame + if request.param == "mixed_int": + return mixed_int_frame + + +def _safe_add(df): + # only add to the numeric items + def is_ok(s): + return ( + issubclass(s.dtype.type, (np.integer, np.floating)) and s.dtype != "uint8" + ) + + return DataFrame(dict((c, s + 1) if is_ok(s) else (c, s) for c, s in df.items())) + + +class TestDataFrameIndexingWhere: + def test_where_get(self, where_frame, float_string_frame): + def _check_get(df, cond, check_dtypes=True): + other1 = _safe_add(df) + rs = df.where(cond, other1) + rs2 = df.where(cond.values, other1) + for k, v in rs.items(): + exp = Series(np.where(cond[k], df[k], other1[k]), index=v.index) + tm.assert_series_equal(v, exp, check_names=False) + tm.assert_frame_equal(rs, rs2) + + # dtypes + if check_dtypes: + assert (rs.dtypes == df.dtypes).all() + + # check getting + df = where_frame + if df is float_string_frame: + msg = ( + "'>' not supported between instances of 'str' and 'int'" + "|Invalid comparison" + ) + with pytest.raises(TypeError, match=msg): + df > 0 + return + cond = df > 0 + _check_get(df, cond) + + def test_where_upcasting(self): + # upcasting case (GH # 2794) + df = DataFrame( + { + c: Series([1] * 3, dtype=c) + for c in ["float32", "float64", "int32", "int64"] + } + ) + df.iloc[1, :] = 0 + result = df.dtypes + expected = Series( + [ + np.dtype("float32"), + np.dtype("float64"), + np.dtype("int32"), + np.dtype("int64"), + ], + index=["float32", "float64", "int32", "int64"], + ) + + # when we don't preserve boolean casts + # + # expected = Series({ 'float32' : 1, 'float64' : 3 }) + + tm.assert_series_equal(result, expected) + + @pytest.mark.filterwarnings("ignore:Downcasting object dtype arrays:FutureWarning") + def test_where_alignment(self, where_frame, float_string_frame): + # aligning + def _check_align(df, cond, other, check_dtypes=True): + rs = df.where(cond, other) + for i, k in enumerate(rs.columns): + result = rs[k] + d = df[k].values + c = cond[k].reindex(df[k].index).fillna(False).values + + if is_scalar(other): + o = other + elif isinstance(other, np.ndarray): + o = Series(other[:, i], index=result.index).values + else: + o = other[k].values + + new_values = d if c.all() else np.where(c, d, o) + expected = Series(new_values, index=result.index, name=k) + + # since we can't always have the correct numpy dtype + # as numpy doesn't know how to downcast, don't check + tm.assert_series_equal(result, expected, check_dtype=False) + + # dtypes + # can't check dtype when other is an ndarray + + if check_dtypes and not isinstance(other, np.ndarray): + assert (rs.dtypes == df.dtypes).all() + + df = where_frame + if df is float_string_frame: + msg = ( + "'>' not supported between instances of 'str' and 'int'" + "|Invalid comparison" + ) + with pytest.raises(TypeError, match=msg): + df > 0 + return + + # other is a frame + cond = (df > 0)[1:] + _check_align(df, cond, _safe_add(df)) + + # check other is ndarray + cond = df > 0 + _check_align(df, cond, (_safe_add(df).values)) + + # integers are upcast, so don't check the dtypes + cond = df > 0 + check_dtypes = all(not issubclass(s.type, np.integer) for s in df.dtypes) + _check_align(df, cond, np.nan, check_dtypes=check_dtypes) + + # Ignore deprecation warning in Python 3.12 for inverting a bool + @pytest.mark.filterwarnings("ignore::DeprecationWarning") + def test_where_invalid(self): + # invalid conditions + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 3)), columns=["A", "B", "C"] + ) + cond = df > 0 + + err1 = (df + 1).values[0:2, :] + msg = "other must be the same shape as self when an ndarray" + with pytest.raises(ValueError, match=msg): + df.where(cond, err1) + + err2 = cond.iloc[:2, :].values + other1 = _safe_add(df) + msg = "Array conditional must be same shape as self" + with pytest.raises(ValueError, match=msg): + df.where(err2, other1) + + with pytest.raises(ValueError, match=msg): + df.mask(True) + with pytest.raises(ValueError, match=msg): + df.mask(0) + + @pytest.mark.filterwarnings("ignore:Downcasting object dtype arrays:FutureWarning") + def test_where_set(self, where_frame, float_string_frame, mixed_int_frame): + # where inplace + + def _check_set(df, cond, check_dtypes=True): + dfi = df.copy() + econd = cond.reindex_like(df).fillna(True).infer_objects(copy=False) + expected = dfi.mask(~econd) + + return_value = dfi.where(cond, np.nan, inplace=True) + assert return_value is None + tm.assert_frame_equal(dfi, expected) + + # dtypes (and confirm upcasts)x + if check_dtypes: + for k, v in df.dtypes.items(): + if issubclass(v.type, np.integer) and not cond[k].all(): + v = np.dtype("float64") + assert dfi[k].dtype == v + + df = where_frame + if df is float_string_frame: + msg = ( + "'>' not supported between instances of 'str' and 'int'" + "|Invalid comparison" + ) + with pytest.raises(TypeError, match=msg): + df > 0 + return + if df is mixed_int_frame: + df = df.astype("float64") + + cond = df > 0 + _check_set(df, cond) + + cond = df >= 0 + _check_set(df, cond) + + # aligning + cond = (df >= 0)[1:] + _check_set(df, cond) + + def test_where_series_slicing(self): + # GH 10218 + # test DataFrame.where with Series slicing + df = DataFrame({"a": range(3), "b": range(4, 7)}) + result = df.where(df["a"] == 1) + expected = df[df["a"] == 1].reindex(df.index) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("klass", [list, tuple, np.array]) + def test_where_array_like(self, klass): + # see gh-15414 + df = DataFrame({"a": [1, 2, 3]}) + cond = [[False], [True], [True]] + expected = DataFrame({"a": [np.nan, 2, 3]}) + + result = df.where(klass(cond)) + tm.assert_frame_equal(result, expected) + + df["b"] = 2 + expected["b"] = [2, np.nan, 2] + cond = [[False, True], [True, False], [True, True]] + + result = df.where(klass(cond)) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "cond", + [ + [[1], [0], [1]], + Series([[2], [5], [7]]), + DataFrame({"a": [2, 5, 7]}), + [["True"], ["False"], ["True"]], + [[Timestamp("2017-01-01")], [pd.NaT], [Timestamp("2017-01-02")]], + ], + ) + def test_where_invalid_input_single(self, cond): + # see gh-15414: only boolean arrays accepted + df = DataFrame({"a": [1, 2, 3]}) + msg = "Boolean array expected for the condition" + + with pytest.raises(ValueError, match=msg): + df.where(cond) + + @pytest.mark.parametrize( + "cond", + [ + [[0, 1], [1, 0], [1, 1]], + Series([[0, 2], [5, 0], [4, 7]]), + [["False", "True"], ["True", "False"], ["True", "True"]], + DataFrame({"a": [2, 5, 7], "b": [4, 8, 9]}), + [ + [pd.NaT, Timestamp("2017-01-01")], + [Timestamp("2017-01-02"), pd.NaT], + [Timestamp("2017-01-03"), Timestamp("2017-01-03")], + ], + ], + ) + def test_where_invalid_input_multiple(self, cond): + # see gh-15414: only boolean arrays accepted + df = DataFrame({"a": [1, 2, 3], "b": [2, 2, 2]}) + msg = "Boolean array expected for the condition" + + with pytest.raises(ValueError, match=msg): + df.where(cond) + + def test_where_dataframe_col_match(self): + df = DataFrame([[1, 2, 3], [4, 5, 6]]) + cond = DataFrame([[True, False, True], [False, False, True]]) + + result = df.where(cond) + expected = DataFrame([[1.0, np.nan, 3], [np.nan, np.nan, 6]]) + tm.assert_frame_equal(result, expected) + + # this *does* align, though has no matching columns + cond.columns = ["a", "b", "c"] + result = df.where(cond) + expected = DataFrame(np.nan, index=df.index, columns=df.columns) + tm.assert_frame_equal(result, expected) + + def test_where_ndframe_align(self): + msg = "Array conditional must be same shape as self" + df = DataFrame([[1, 2, 3], [4, 5, 6]]) + + cond = [True] + with pytest.raises(ValueError, match=msg): + df.where(cond) + + expected = DataFrame([[1, 2, 3], [np.nan, np.nan, np.nan]]) + + out = df.where(Series(cond)) + tm.assert_frame_equal(out, expected) + + cond = np.array([False, True, False, True]) + with pytest.raises(ValueError, match=msg): + df.where(cond) + + expected = DataFrame([[np.nan, np.nan, np.nan], [4, 5, 6]]) + + out = df.where(Series(cond)) + tm.assert_frame_equal(out, expected) + + def test_where_bug(self): + # see gh-2793 + df = DataFrame( + {"a": [1.0, 2.0, 3.0, 4.0], "b": [4.0, 3.0, 2.0, 1.0]}, dtype="float64" + ) + expected = DataFrame( + {"a": [np.nan, np.nan, 3.0, 4.0], "b": [4.0, 3.0, np.nan, np.nan]}, + dtype="float64", + ) + result = df.where(df > 2, np.nan) + tm.assert_frame_equal(result, expected) + + result = df.copy() + return_value = result.where(result > 2, np.nan, inplace=True) + assert return_value is None + tm.assert_frame_equal(result, expected) + + def test_where_bug_mixed(self, any_signed_int_numpy_dtype): + # see gh-2793 + df = DataFrame( + { + "a": np.array([1, 2, 3, 4], dtype=any_signed_int_numpy_dtype), + "b": np.array([4.0, 3.0, 2.0, 1.0], dtype="float64"), + } + ) + + expected = DataFrame( + {"a": [-1, -1, 3, 4], "b": [4.0, 3.0, -1, -1]}, + ).astype({"a": any_signed_int_numpy_dtype, "b": "float64"}) + + result = df.where(df > 2, -1) + tm.assert_frame_equal(result, expected) + + result = df.copy() + return_value = result.where(result > 2, -1, inplace=True) + assert return_value is None + tm.assert_frame_equal(result, expected) + + def test_where_bug_transposition(self): + # see gh-7506 + a = DataFrame({0: [1, 2], 1: [3, 4], 2: [5, 6]}) + b = DataFrame({0: [np.nan, 8], 1: [9, np.nan], 2: [np.nan, np.nan]}) + do_not_replace = b.isna() | (a > b) + + expected = a.copy() + expected[~do_not_replace] = b + + msg = "Downcasting behavior in Series and DataFrame methods 'where'" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = a.where(do_not_replace, b) + tm.assert_frame_equal(result, expected) + + a = DataFrame({0: [4, 6], 1: [1, 0]}) + b = DataFrame({0: [np.nan, 3], 1: [3, np.nan]}) + do_not_replace = b.isna() | (a > b) + + expected = a.copy() + expected[~do_not_replace] = b + + with tm.assert_produces_warning(FutureWarning, match=msg): + result = a.where(do_not_replace, b) + tm.assert_frame_equal(result, expected) + + def test_where_datetime(self): + # GH 3311 + df = DataFrame( + { + "A": date_range("20130102", periods=5), + "B": date_range("20130104", periods=5), + "C": np.random.default_rng(2).standard_normal(5), + } + ) + + stamp = datetime(2013, 1, 3) + msg = "'>' not supported between instances of 'float' and 'datetime.datetime'" + with pytest.raises(TypeError, match=msg): + df > stamp + + result = df[df.iloc[:, :-1] > stamp] + + expected = df.copy() + expected.loc[[0, 1], "A"] = np.nan + + expected.loc[:, "C"] = np.nan + tm.assert_frame_equal(result, expected) + + def test_where_none(self): + # GH 4667 + # setting with None changes dtype + df = DataFrame({"series": Series(range(10))}).astype(float) + df[df > 7] = None + expected = DataFrame( + {"series": Series([0, 1, 2, 3, 4, 5, 6, 7, np.nan, np.nan])} + ) + tm.assert_frame_equal(df, expected) + + # GH 7656 + df = DataFrame( + [ + {"A": 1, "B": np.nan, "C": "Test"}, + {"A": np.nan, "B": "Test", "C": np.nan}, + ] + ) + + orig = df.copy() + + mask = ~isna(df) + df.where(mask, None, inplace=True) + expected = DataFrame( + { + "A": [1.0, np.nan], + "B": [None, "Test"], + "C": ["Test", None], + } + ) + tm.assert_frame_equal(df, expected) + + df = orig.copy() + df[~mask] = None + tm.assert_frame_equal(df, expected) + + def test_where_empty_df_and_empty_cond_having_non_bool_dtypes(self): + # see gh-21947 + df = DataFrame(columns=["a"]) + cond = df + assert (cond.dtypes == object).all() + + result = df.where(cond) + tm.assert_frame_equal(result, df) + + def test_where_align(self): + def create(): + df = DataFrame(np.random.default_rng(2).standard_normal((10, 3))) + df.iloc[3:5, 0] = np.nan + df.iloc[4:6, 1] = np.nan + df.iloc[5:8, 2] = np.nan + return df + + # series + df = create() + expected = df.fillna(df.mean()) + result = df.where(pd.notna(df), df.mean(), axis="columns") + tm.assert_frame_equal(result, expected) + + return_value = df.where(pd.notna(df), df.mean(), inplace=True, axis="columns") + assert return_value is None + tm.assert_frame_equal(df, expected) + + df = create().fillna(0) + expected = df.apply(lambda x, y: x.where(x > 0, y), y=df[0]) + result = df.where(df > 0, df[0], axis="index") + tm.assert_frame_equal(result, expected) + result = df.where(df > 0, df[0], axis="rows") + tm.assert_frame_equal(result, expected) + + # frame + df = create() + expected = df.fillna(1) + result = df.where( + pd.notna(df), DataFrame(1, index=df.index, columns=df.columns) + ) + tm.assert_frame_equal(result, expected) + + def test_where_complex(self): + # GH 6345 + expected = DataFrame([[1 + 1j, 2], [np.nan, 4 + 1j]], columns=["a", "b"]) + df = DataFrame([[1 + 1j, 2], [5 + 1j, 4 + 1j]], columns=["a", "b"]) + df[df.abs() >= 5] = np.nan + tm.assert_frame_equal(df, expected) + + def test_where_axis(self): + # GH 9736 + df = DataFrame(np.random.default_rng(2).standard_normal((2, 2))) + mask = DataFrame([[False, False], [False, False]]) + ser = Series([0, 1]) + + expected = DataFrame([[0, 0], [1, 1]], dtype="float64") + result = df.where(mask, ser, axis="index") + tm.assert_frame_equal(result, expected) + + result = df.copy() + return_value = result.where(mask, ser, axis="index", inplace=True) + assert return_value is None + tm.assert_frame_equal(result, expected) + + expected = DataFrame([[0, 1], [0, 1]], dtype="float64") + result = df.where(mask, ser, axis="columns") + tm.assert_frame_equal(result, expected) + + result = df.copy() + return_value = result.where(mask, ser, axis="columns", inplace=True) + assert return_value is None + tm.assert_frame_equal(result, expected) + + def test_where_axis_with_upcast(self): + # Upcast needed + df = DataFrame([[1, 2], [3, 4]], dtype="int64") + mask = DataFrame([[False, False], [False, False]]) + ser = Series([0, np.nan]) + + expected = DataFrame([[0, 0], [np.nan, np.nan]], dtype="float64") + result = df.where(mask, ser, axis="index") + tm.assert_frame_equal(result, expected) + + result = df.copy() + with tm.assert_produces_warning(FutureWarning, match="incompatible dtype"): + return_value = result.where(mask, ser, axis="index", inplace=True) + assert return_value is None + tm.assert_frame_equal(result, expected) + + expected = DataFrame([[0, np.nan], [0, np.nan]]) + result = df.where(mask, ser, axis="columns") + tm.assert_frame_equal(result, expected) + + expected = DataFrame( + { + 0: np.array([0, 0], dtype="int64"), + 1: np.array([np.nan, np.nan], dtype="float64"), + } + ) + result = df.copy() + with tm.assert_produces_warning(FutureWarning, match="incompatible dtype"): + return_value = result.where(mask, ser, axis="columns", inplace=True) + assert return_value is None + tm.assert_frame_equal(result, expected) + + def test_where_axis_multiple_dtypes(self): + # Multiple dtypes (=> multiple Blocks) + df = pd.concat( + [ + DataFrame(np.random.default_rng(2).standard_normal((10, 2))), + DataFrame( + np.random.default_rng(2).integers(0, 10, size=(10, 2)), + dtype="int64", + ), + ], + ignore_index=True, + axis=1, + ) + mask = DataFrame(False, columns=df.columns, index=df.index) + s1 = Series(1, index=df.columns) + s2 = Series(2, index=df.index) + + result = df.where(mask, s1, axis="columns") + expected = DataFrame(1.0, columns=df.columns, index=df.index) + expected[2] = expected[2].astype("int64") + expected[3] = expected[3].astype("int64") + tm.assert_frame_equal(result, expected) + + result = df.copy() + return_value = result.where(mask, s1, axis="columns", inplace=True) + assert return_value is None + tm.assert_frame_equal(result, expected) + + result = df.where(mask, s2, axis="index") + expected = DataFrame(2.0, columns=df.columns, index=df.index) + expected[2] = expected[2].astype("int64") + expected[3] = expected[3].astype("int64") + tm.assert_frame_equal(result, expected) + + result = df.copy() + return_value = result.where(mask, s2, axis="index", inplace=True) + assert return_value is None + tm.assert_frame_equal(result, expected) + + # DataFrame vs DataFrame + d1 = df.copy().drop(1, axis=0) + # Explicit cast to avoid implicit cast when setting value to np.nan + expected = df.copy().astype("float") + expected.loc[1, :] = np.nan + + result = df.where(mask, d1) + tm.assert_frame_equal(result, expected) + result = df.where(mask, d1, axis="index") + tm.assert_frame_equal(result, expected) + result = df.copy() + with tm.assert_produces_warning(FutureWarning, match="incompatible dtype"): + return_value = result.where(mask, d1, inplace=True) + assert return_value is None + tm.assert_frame_equal(result, expected) + result = df.copy() + with tm.assert_produces_warning(FutureWarning, match="incompatible dtype"): + return_value = result.where(mask, d1, inplace=True, axis="index") + assert return_value is None + tm.assert_frame_equal(result, expected) + + d2 = df.copy().drop(1, axis=1) + expected = df.copy() + expected.loc[:, 1] = np.nan + + result = df.where(mask, d2) + tm.assert_frame_equal(result, expected) + result = df.where(mask, d2, axis="columns") + tm.assert_frame_equal(result, expected) + result = df.copy() + return_value = result.where(mask, d2, inplace=True) + assert return_value is None + tm.assert_frame_equal(result, expected) + result = df.copy() + return_value = result.where(mask, d2, inplace=True, axis="columns") + assert return_value is None + tm.assert_frame_equal(result, expected) + + def test_where_callable(self): + # GH 12533 + df = DataFrame([[1, 2, 3], [4, 5, 6], [7, 8, 9]]) + result = df.where(lambda x: x > 4, lambda x: x + 1) + exp = DataFrame([[2, 3, 4], [5, 5, 6], [7, 8, 9]]) + tm.assert_frame_equal(result, exp) + tm.assert_frame_equal(result, df.where(df > 4, df + 1)) + + # return ndarray and scalar + result = df.where(lambda x: (x % 2 == 0).values, lambda x: 99) + exp = DataFrame([[99, 2, 99], [4, 99, 6], [99, 8, 99]]) + tm.assert_frame_equal(result, exp) + tm.assert_frame_equal(result, df.where(df % 2 == 0, 99)) + + # chain + result = (df + 2).where(lambda x: x > 8, lambda x: x + 10) + exp = DataFrame([[13, 14, 15], [16, 17, 18], [9, 10, 11]]) + tm.assert_frame_equal(result, exp) + tm.assert_frame_equal(result, (df + 2).where((df + 2) > 8, (df + 2) + 10)) + + def test_where_tz_values(self, tz_naive_fixture, frame_or_series): + obj1 = DataFrame( + DatetimeIndex(["20150101", "20150102", "20150103"], tz=tz_naive_fixture), + columns=["date"], + ) + obj2 = DataFrame( + DatetimeIndex(["20150103", "20150104", "20150105"], tz=tz_naive_fixture), + columns=["date"], + ) + mask = DataFrame([True, True, False], columns=["date"]) + exp = DataFrame( + DatetimeIndex(["20150101", "20150102", "20150105"], tz=tz_naive_fixture), + columns=["date"], + ) + if frame_or_series is Series: + obj1 = obj1["date"] + obj2 = obj2["date"] + mask = mask["date"] + exp = exp["date"] + + result = obj1.where(mask, obj2) + tm.assert_equal(exp, result) + + def test_df_where_change_dtype(self): + # GH#16979 + df = DataFrame(np.arange(2 * 3).reshape(2, 3), columns=list("ABC")) + mask = np.array([[True, False, False], [False, False, True]]) + + result = df.where(mask) + expected = DataFrame( + [[0, np.nan, np.nan], [np.nan, np.nan, 5]], columns=list("ABC") + ) + + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("kwargs", [{}, {"other": None}]) + def test_df_where_with_category(self, kwargs): + # GH#16979 + data = np.arange(2 * 3, dtype=np.int64).reshape(2, 3) + df = DataFrame(data, columns=list("ABC")) + mask = np.array([[True, False, False], [False, False, True]]) + + # change type to category + df.A = df.A.astype("category") + df.B = df.B.astype("category") + df.C = df.C.astype("category") + + result = df.where(mask, **kwargs) + A = pd.Categorical([0, np.nan], categories=[0, 3]) + B = pd.Categorical([np.nan, np.nan], categories=[1, 4]) + C = pd.Categorical([np.nan, 5], categories=[2, 5]) + expected = DataFrame({"A": A, "B": B, "C": C}) + + tm.assert_frame_equal(result, expected) + + # Check Series.where while we're here + result = df.A.where(mask[:, 0], **kwargs) + expected = Series(A, name="A") + + tm.assert_series_equal(result, expected) + + def test_where_categorical_filtering(self): + # GH#22609 Verify filtering operations on DataFrames with categorical Series + df = DataFrame(data=[[0, 0], [1, 1]], columns=["a", "b"]) + df["b"] = df["b"].astype("category") + + result = df.where(df["a"] > 0) + # Explicitly cast to 'float' to avoid implicit cast when setting np.nan + expected = df.copy().astype({"a": "float"}) + expected.loc[0, :] = np.nan + + tm.assert_equal(result, expected) + + def test_where_ea_other(self): + # GH#38729/GH#38742 + df = DataFrame({"A": [1, 2, 3], "B": [4, 5, 6]}) + arr = pd.array([7, pd.NA, 9]) + ser = Series(arr) + mask = np.ones(df.shape, dtype=bool) + mask[1, :] = False + + # TODO: ideally we would get Int64 instead of object + result = df.where(mask, ser, axis=0) + expected = DataFrame({"A": [1, np.nan, 3], "B": [4, np.nan, 6]}) + tm.assert_frame_equal(result, expected) + + ser2 = Series(arr[:2], index=["A", "B"]) + expected = DataFrame({"A": [1, 7, 3], "B": [4, np.nan, 6]}) + result = df.where(mask, ser2, axis=1) + tm.assert_frame_equal(result, expected) + + def test_where_interval_noop(self): + # GH#44181 + df = DataFrame([pd.Interval(0, 0)]) + res = df.where(df.notna()) + tm.assert_frame_equal(res, df) + + ser = df[0] + res = ser.where(ser.notna()) + tm.assert_series_equal(res, ser) + + def test_where_interval_fullop_downcast(self, frame_or_series): + # GH#45768 + obj = frame_or_series([pd.Interval(0, 0)] * 2) + other = frame_or_series([1.0, 2.0]) + + msg = "Downcasting behavior in Series and DataFrame methods 'where'" + with tm.assert_produces_warning(FutureWarning, match=msg): + res = obj.where(~obj.notna(), other) + + # since all entries are being changed, we will downcast result + # from object to ints (not floats) + tm.assert_equal(res, other.astype(np.int64)) + + # unlike where, Block.putmask does not downcast + with tm.assert_produces_warning( + FutureWarning, match="Setting an item of incompatible dtype" + ): + obj.mask(obj.notna(), other, inplace=True) + tm.assert_equal(obj, other.astype(object)) + + @pytest.mark.parametrize( + "dtype", + [ + "timedelta64[ns]", + "datetime64[ns]", + "datetime64[ns, Asia/Tokyo]", + "Period[D]", + ], + ) + def test_where_datetimelike_noop(self, dtype): + # GH#45135, analogue to GH#44181 for Period don't raise on no-op + # For td64/dt64/dt64tz we already don't raise, but also are + # checking that we don't unnecessarily upcast to object. + with tm.assert_produces_warning(FutureWarning, match="is deprecated"): + ser = Series(np.arange(3) * 10**9, dtype=np.int64).view(dtype) + df = ser.to_frame() + mask = np.array([False, False, False]) + + res = ser.where(~mask, "foo") + tm.assert_series_equal(res, ser) + + mask2 = mask.reshape(-1, 1) + res2 = df.where(~mask2, "foo") + tm.assert_frame_equal(res2, df) + + res3 = ser.mask(mask, "foo") + tm.assert_series_equal(res3, ser) + + res4 = df.mask(mask2, "foo") + tm.assert_frame_equal(res4, df) + + # opposite case where we are replacing *all* values -> we downcast + # from object dtype # GH#45768 + msg = "Downcasting behavior in Series and DataFrame methods 'where'" + with tm.assert_produces_warning(FutureWarning, match=msg): + res5 = df.where(mask2, 4) + expected = DataFrame(4, index=df.index, columns=df.columns) + tm.assert_frame_equal(res5, expected) + + # unlike where, Block.putmask does not downcast + with tm.assert_produces_warning( + FutureWarning, match="Setting an item of incompatible dtype" + ): + df.mask(~mask2, 4, inplace=True) + tm.assert_frame_equal(df, expected.astype(object)) + + +def test_where_int_downcasting_deprecated(): + # GH#44597 + arr = np.arange(6).astype(np.int16).reshape(3, 2) + df = DataFrame(arr) + + mask = np.zeros(arr.shape, dtype=bool) + mask[:, 0] = True + + res = df.where(mask, 2**17) + + expected = DataFrame({0: arr[:, 0], 1: np.array([2**17] * 3, dtype=np.int32)}) + tm.assert_frame_equal(res, expected) + + +def test_where_copies_with_noop(frame_or_series): + # GH-39595 + result = frame_or_series([1, 2, 3, 4]) + expected = result.copy() + col = result[0] if frame_or_series is DataFrame else result + + where_res = result.where(col < 5) + where_res *= 2 + + tm.assert_equal(result, expected) + + where_res = result.where(col > 5, [1, 2, 3, 4]) + where_res *= 2 + + tm.assert_equal(result, expected) + + +def test_where_string_dtype(frame_or_series): + # GH40824 + obj = frame_or_series( + ["a", "b", "c", "d"], index=["id1", "id2", "id3", "id4"], dtype=StringDtype() + ) + filtered_obj = frame_or_series( + ["b", "c"], index=["id2", "id3"], dtype=StringDtype() + ) + filter_ser = Series([False, True, True, False]) + + result = obj.where(filter_ser, filtered_obj) + expected = frame_or_series( + [pd.NA, "b", "c", pd.NA], + index=["id1", "id2", "id3", "id4"], + dtype=StringDtype(), + ) + tm.assert_equal(result, expected) + + result = obj.mask(~filter_ser, filtered_obj) + tm.assert_equal(result, expected) + + obj.mask(~filter_ser, filtered_obj, inplace=True) + tm.assert_equal(result, expected) + + +def test_where_bool_comparison(): + # GH 10336 + df_mask = DataFrame( + {"AAA": [True] * 4, "BBB": [False] * 4, "CCC": [True, False, True, False]} + ) + result = df_mask.where(df_mask == False) # noqa: E712 + expected = DataFrame( + { + "AAA": np.array([np.nan] * 4, dtype=object), + "BBB": [False] * 4, + "CCC": [np.nan, False, np.nan, False], + } + ) + tm.assert_frame_equal(result, expected) + + +def test_where_none_nan_coerce(): + # GH 15613 + expected = DataFrame( + { + "A": [Timestamp("20130101"), pd.NaT, Timestamp("20130103")], + "B": [1, 2, np.nan], + } + ) + result = expected.where(expected.notnull(), None) + tm.assert_frame_equal(result, expected) + + +def test_where_duplicate_axes_mixed_dtypes(): + # GH 25399, verify manually masking is not affected anymore by dtype of column for + # duplicate axes. + result = DataFrame(data=[[0, np.nan]], columns=Index(["A", "A"])) + index, columns = result.axes + mask = DataFrame(data=[[True, True]], columns=columns, index=index) + a = result.astype(object).where(mask) + b = result.astype("f8").where(mask) + c = result.T.where(mask.T).T + d = result.where(mask) # used to fail with "cannot reindex from a duplicate axis" + tm.assert_frame_equal(a.astype("f8"), b.astype("f8")) + tm.assert_frame_equal(b.astype("f8"), c.astype("f8")) + tm.assert_frame_equal(c.astype("f8"), d.astype("f8")) + + +def test_where_columns_casting(): + # GH 42295 + + df = DataFrame({"a": [1.0, 2.0], "b": [3, np.nan]}) + expected = df.copy() + result = df.where(pd.notnull(df), None) + # make sure dtypes don't change + tm.assert_frame_equal(expected, result) + + +@pytest.mark.parametrize("as_cat", [True, False]) +def test_where_period_invalid_na(frame_or_series, as_cat, request): + # GH#44697 + idx = pd.period_range("2016-01-01", periods=3, freq="D") + if as_cat: + idx = idx.astype("category") + obj = frame_or_series(idx) + + # NA value that we should *not* cast to Period dtype + tdnat = pd.NaT.to_numpy("m8[ns]") + + mask = np.array([True, True, False], ndmin=obj.ndim).T + + if as_cat: + msg = ( + r"Cannot setitem on a Categorical with a new category \(NaT\), " + "set the categories first" + ) + else: + msg = "value should be a 'Period'" + + if as_cat: + with pytest.raises(TypeError, match=msg): + obj.where(mask, tdnat) + + with pytest.raises(TypeError, match=msg): + obj.mask(mask, tdnat) + + with pytest.raises(TypeError, match=msg): + obj.mask(mask, tdnat, inplace=True) + + else: + # With PeriodDtype, ser[i] = tdnat coerces instead of raising, + # so for consistency, ser[mask] = tdnat must as well + expected = obj.astype(object).where(mask, tdnat) + result = obj.where(mask, tdnat) + tm.assert_equal(result, expected) + + expected = obj.astype(object).mask(mask, tdnat) + result = obj.mask(mask, tdnat) + tm.assert_equal(result, expected) + + with tm.assert_produces_warning( + FutureWarning, match="Setting an item of incompatible dtype" + ): + obj.mask(mask, tdnat, inplace=True) + tm.assert_equal(obj, expected) + + +def test_where_nullable_invalid_na(frame_or_series, any_numeric_ea_dtype): + # GH#44697 + arr = pd.array([1, 2, 3], dtype=any_numeric_ea_dtype) + obj = frame_or_series(arr) + + mask = np.array([True, True, False], ndmin=obj.ndim).T + + msg = r"Invalid value '.*' for dtype '(U?Int|Float)\d{1,2}'" + + for null in tm.NP_NAT_OBJECTS + [pd.NaT]: + # NaT is an NA value that we should *not* cast to pd.NA dtype + with pytest.raises(TypeError, match=msg): + obj.where(mask, null) + + with pytest.raises(TypeError, match=msg): + obj.mask(mask, null) + + +@given(data=OPTIONAL_ONE_OF_ALL) +def test_where_inplace_casting(data): + # GH 22051 + df = DataFrame({"a": data}) + df_copy = df.where(pd.notnull(df), None).copy() + df.where(pd.notnull(df), None, inplace=True) + tm.assert_equal(df, df_copy) + + +def test_where_downcast_to_td64(): + ser = Series([1, 2, 3]) + + mask = np.array([False, False, False]) + + td = pd.Timedelta(days=1) + + msg = "Downcasting behavior in Series and DataFrame methods 'where'" + with tm.assert_produces_warning(FutureWarning, match=msg): + res = ser.where(mask, td) + expected = Series([td, td, td], dtype="m8[ns]") + tm.assert_series_equal(res, expected) + + with pd.option_context("future.no_silent_downcasting", True): + with tm.assert_produces_warning(None, match=msg): + res2 = ser.where(mask, td) + expected2 = expected.astype(object) + tm.assert_series_equal(res2, expected2) + + +def _check_where_equivalences(df, mask, other, expected): + # similar to tests.series.indexing.test_setitem.SetitemCastingEquivalences + # but with DataFrame in mind and less fleshed-out + res = df.where(mask, other) + tm.assert_frame_equal(res, expected) + + res = df.mask(~mask, other) + tm.assert_frame_equal(res, expected) + + # Note: frame.mask(~mask, other, inplace=True) takes some more work bc + # Block.putmask does *not* downcast. The change to 'expected' here + # is specific to the cases in test_where_dt64_2d. + df = df.copy() + df.mask(~mask, other, inplace=True) + if not mask.all(): + # with mask.all(), Block.putmask is a no-op, so does not downcast + expected = expected.copy() + expected["A"] = expected["A"].astype(object) + tm.assert_frame_equal(df, expected) + + +def test_where_dt64_2d(): + dti = date_range("2016-01-01", periods=6) + dta = dti._data.reshape(3, 2) + other = dta - dta[0, 0] + + df = DataFrame(dta, columns=["A", "B"]) + + mask = np.asarray(df.isna()).copy() + mask[:, 1] = True + + # setting all of one column, none of the other + expected = DataFrame({"A": other[:, 0], "B": dta[:, 1]}) + with tm.assert_produces_warning( + FutureWarning, match="Setting an item of incompatible dtype" + ): + _check_where_equivalences(df, mask, other, expected) + + # setting part of one column, none of the other + mask[1, 0] = True + expected = DataFrame( + { + "A": np.array([other[0, 0], dta[1, 0], other[2, 0]], dtype=object), + "B": dta[:, 1], + } + ) + with tm.assert_produces_warning( + FutureWarning, match="Setting an item of incompatible dtype" + ): + _check_where_equivalences(df, mask, other, expected) + + # setting nothing in either column + mask[:] = True + expected = df + _check_where_equivalences(df, mask, other, expected) + + +def test_where_producing_ea_cond_for_np_dtype(): + # GH#44014 + df = DataFrame({"a": Series([1, pd.NA, 2], dtype="Int64"), "b": [1, 2, 3]}) + result = df.where(lambda x: x.apply(lambda y: y > 1, axis=1)) + expected = DataFrame( + {"a": Series([pd.NA, pd.NA, 2], dtype="Int64"), "b": [np.nan, 2, 3]} + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "replacement", [0.001, True, "snake", None, datetime(2022, 5, 4)] +) +def test_where_int_overflow(replacement): + # GH 31687 + df = DataFrame([[1.0, 2e25, "nine"], [np.nan, 0.1, None]]) + result = df.where(pd.notnull(df), replacement) + expected = DataFrame([[1.0, 2e25, "nine"], [replacement, 0.1, replacement]]) + + tm.assert_frame_equal(result, expected) + + +def test_where_inplace_no_other(): + # GH#51685 + df = DataFrame({"a": [1.0, 2.0], "b": ["x", "y"]}) + cond = DataFrame({"a": [True, False], "b": [False, True]}) + df.where(cond, inplace=True) + expected = DataFrame({"a": [1, np.nan], "b": [np.nan, "y"]}) + tm.assert_frame_equal(df, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_xs.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_xs.py new file mode 100644 index 0000000000000000000000000000000000000000..2aa27d1d6a5489933459bb877fbbbba1d5a1d98b --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/indexing/test_xs.py @@ -0,0 +1,444 @@ +import re + +import numpy as np +import pytest + +from pandas.errors import SettingWithCopyError + +from pandas import ( + DataFrame, + Index, + IndexSlice, + MultiIndex, + Series, + concat, +) +import pandas._testing as tm + +from pandas.tseries.offsets import BDay + + +@pytest.fixture +def four_level_index_dataframe(): + arr = np.array( + [ + [-0.5109, -2.3358, -0.4645, 0.05076, 0.364], + [0.4473, 1.4152, 0.2834, 1.00661, 0.1744], + [-0.6662, -0.5243, -0.358, 0.89145, 2.5838], + ] + ) + index = MultiIndex( + levels=[["a", "x"], ["b", "q"], [10.0032, 20.0, 30.0], [3, 4, 5]], + codes=[[0, 0, 1], [0, 1, 1], [0, 1, 2], [2, 1, 0]], + names=["one", "two", "three", "four"], + ) + return DataFrame(arr, index=index, columns=list("ABCDE")) + + +class TestXS: + def test_xs( + self, float_frame, datetime_frame, using_copy_on_write, warn_copy_on_write + ): + float_frame_orig = float_frame.copy() + idx = float_frame.index[5] + xs = float_frame.xs(idx) + for item, value in xs.items(): + if np.isnan(value): + assert np.isnan(float_frame[item][idx]) + else: + assert value == float_frame[item][idx] + + # mixed-type xs + test_data = {"A": {"1": 1, "2": 2}, "B": {"1": "1", "2": "2", "3": "3"}} + frame = DataFrame(test_data) + xs = frame.xs("1") + assert xs.dtype == np.object_ + assert xs["A"] == 1 + assert xs["B"] == "1" + + with pytest.raises( + KeyError, match=re.escape("Timestamp('1999-12-31 00:00:00')") + ): + datetime_frame.xs(datetime_frame.index[0] - BDay()) + + # xs get column + series = float_frame.xs("A", axis=1) + expected = float_frame["A"] + tm.assert_series_equal(series, expected) + + # view is returned if possible + series = float_frame.xs("A", axis=1) + with tm.assert_cow_warning(warn_copy_on_write): + series[:] = 5 + if using_copy_on_write: + # but with CoW the view shouldn't propagate mutations + tm.assert_series_equal(float_frame["A"], float_frame_orig["A"]) + assert not (expected == 5).all() + else: + assert (expected == 5).all() + + def test_xs_corner(self): + # pathological mixed-type reordering case + df = DataFrame(index=[0], columns=Index([], dtype="str")) + df["A"] = 1.0 + df["B"] = "foo" + df["C"] = 2.0 + df["D"] = "bar" + df["E"] = 3.0 + + xs = df.xs(0) + exp = Series([1.0, "foo", 2.0, "bar", 3.0], index=list("ABCDE"), name=0) + tm.assert_series_equal(xs, exp) + + # no columns but Index(dtype=object) + df = DataFrame(index=["a", "b", "c"]) + result = df.xs("a") + expected = Series([], name="a", dtype=np.float64) + tm.assert_series_equal(result, expected) + + def test_xs_duplicates(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 2)), + index=["b", "b", "c", "b", "a"], + ) + + cross = df.xs("c") + exp = df.iloc[2] + tm.assert_series_equal(cross, exp) + + def test_xs_keep_level(self): + df = DataFrame( + { + "day": {0: "sat", 1: "sun"}, + "flavour": {0: "strawberry", 1: "strawberry"}, + "sales": {0: 10, 1: 12}, + "year": {0: 2008, 1: 2008}, + } + ).set_index(["year", "flavour", "day"]) + result = df.xs("sat", level="day", drop_level=False) + expected = df[:1] + tm.assert_frame_equal(result, expected) + + result = df.xs((2008, "sat"), level=["year", "day"], drop_level=False) + tm.assert_frame_equal(result, expected) + + def test_xs_view( + self, using_array_manager, using_copy_on_write, warn_copy_on_write + ): + # in 0.14 this will return a view if possible a copy otherwise, but + # this is numpy dependent + + dm = DataFrame(np.arange(20.0).reshape(4, 5), index=range(4), columns=range(5)) + df_orig = dm.copy() + + if using_copy_on_write: + with tm.raises_chained_assignment_error(): + dm.xs(2)[:] = 20 + tm.assert_frame_equal(dm, df_orig) + elif using_array_manager: + # INFO(ArrayManager) with ArrayManager getting a row as a view is + # not possible + msg = r"\nA value is trying to be set on a copy of a slice from a DataFrame" + with pytest.raises(SettingWithCopyError, match=msg): + dm.xs(2)[:] = 20 + assert not (dm.xs(2) == 20).any() + else: + with tm.raises_chained_assignment_error(): + dm.xs(2)[:] = 20 + assert (dm.xs(2) == 20).all() + + +class TestXSWithMultiIndex: + def test_xs_doc_example(self): + # TODO: more descriptive name + # based on example in advanced.rst + arrays = [ + ["bar", "bar", "baz", "baz", "foo", "foo", "qux", "qux"], + ["one", "two", "one", "two", "one", "two", "one", "two"], + ] + tuples = list(zip(*arrays)) + + index = MultiIndex.from_tuples(tuples, names=["first", "second"]) + df = DataFrame( + np.random.default_rng(2).standard_normal((3, 8)), + index=["A", "B", "C"], + columns=index, + ) + + result = df.xs(("one", "bar"), level=("second", "first"), axis=1) + + expected = df.iloc[:, [0]] + tm.assert_frame_equal(result, expected) + + def test_xs_integer_key(self): + # see GH#2107 + dates = range(20111201, 20111205) + ids = list("abcde") + index = MultiIndex.from_product([dates, ids], names=["date", "secid"]) + df = DataFrame( + np.random.default_rng(2).standard_normal((len(index), 3)), + index, + ["X", "Y", "Z"], + ) + + result = df.xs(20111201, level="date") + expected = df.loc[20111201, :] + tm.assert_frame_equal(result, expected) + + def test_xs_level(self, multiindex_dataframe_random_data): + df = multiindex_dataframe_random_data + result = df.xs("two", level="second") + expected = df[df.index.get_level_values(1) == "two"] + expected.index = Index(["foo", "bar", "baz", "qux"], name="first") + tm.assert_frame_equal(result, expected) + + def test_xs_level_eq_2(self): + arr = np.random.default_rng(2).standard_normal((3, 5)) + index = MultiIndex( + levels=[["a", "p", "x"], ["b", "q", "y"], ["c", "r", "z"]], + codes=[[2, 0, 1], [2, 0, 1], [2, 0, 1]], + ) + df = DataFrame(arr, index=index) + expected = DataFrame(arr[1:2], index=[["a"], ["b"]]) + result = df.xs("c", level=2) + tm.assert_frame_equal(result, expected) + + def test_xs_setting_with_copy_error( + self, + multiindex_dataframe_random_data, + using_copy_on_write, + warn_copy_on_write, + ): + # this is a copy in 0.14 + df = multiindex_dataframe_random_data + df_orig = df.copy() + result = df.xs("two", level="second") + + if using_copy_on_write or warn_copy_on_write: + result[:] = 10 + else: + # setting this will give a SettingWithCopyError + # as we are trying to write a view + msg = "A value is trying to be set on a copy of a slice from a DataFrame" + with pytest.raises(SettingWithCopyError, match=msg): + result[:] = 10 + tm.assert_frame_equal(df, df_orig) + + def test_xs_setting_with_copy_error_multiple( + self, four_level_index_dataframe, using_copy_on_write, warn_copy_on_write + ): + # this is a copy in 0.14 + df = four_level_index_dataframe + df_orig = df.copy() + result = df.xs(("a", 4), level=["one", "four"]) + + if using_copy_on_write or warn_copy_on_write: + result[:] = 10 + else: + # setting this will give a SettingWithCopyError + # as we are trying to write a view + msg = "A value is trying to be set on a copy of a slice from a DataFrame" + with pytest.raises(SettingWithCopyError, match=msg): + result[:] = 10 + tm.assert_frame_equal(df, df_orig) + + @pytest.mark.parametrize("key, level", [("one", "second"), (["one"], ["second"])]) + def test_xs_with_duplicates(self, key, level, multiindex_dataframe_random_data): + # see GH#13719 + frame = multiindex_dataframe_random_data + df = concat([frame] * 2) + assert df.index.is_unique is False + expected = concat([frame.xs("one", level="second")] * 2) + + if isinstance(key, list): + result = df.xs(tuple(key), level=level) + else: + result = df.xs(key, level=level) + tm.assert_frame_equal(result, expected) + + def test_xs_missing_values_in_index(self): + # see GH#6574 + # missing values in returned index should be preserved + acc = [ + ("a", "abcde", 1), + ("b", "bbcde", 2), + ("y", "yzcde", 25), + ("z", "xbcde", 24), + ("z", None, 26), + ("z", "zbcde", 25), + ("z", "ybcde", 26), + ] + df = DataFrame(acc, columns=["a1", "a2", "cnt"]).set_index(["a1", "a2"]) + expected = DataFrame( + {"cnt": [24, 26, 25, 26]}, + index=Index(["xbcde", np.nan, "zbcde", "ybcde"], name="a2"), + ) + + result = df.xs("z", level="a1") + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "key, level, exp_arr, exp_index", + [ + ("a", "lvl0", lambda x: x[:, 0:2], Index(["bar", "foo"], name="lvl1")), + ("foo", "lvl1", lambda x: x[:, 1:2], Index(["a"], name="lvl0")), + ], + ) + def test_xs_named_levels_axis_eq_1(self, key, level, exp_arr, exp_index): + # see GH#2903 + arr = np.random.default_rng(2).standard_normal((4, 4)) + index = MultiIndex( + levels=[["a", "b"], ["bar", "foo", "hello", "world"]], + codes=[[0, 0, 1, 1], [0, 1, 2, 3]], + names=["lvl0", "lvl1"], + ) + df = DataFrame(arr, columns=index) + result = df.xs(key, level=level, axis=1) + expected = DataFrame(exp_arr(arr), columns=exp_index) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "indexer", + [ + lambda df: df.xs(("a", 4), level=["one", "four"]), + lambda df: df.xs("a").xs(4, level="four"), + ], + ) + def test_xs_level_multiple(self, indexer, four_level_index_dataframe): + df = four_level_index_dataframe + expected_values = [[0.4473, 1.4152, 0.2834, 1.00661, 0.1744]] + expected_index = MultiIndex( + levels=[["q"], [20.0]], codes=[[0], [0]], names=["two", "three"] + ) + expected = DataFrame( + expected_values, index=expected_index, columns=list("ABCDE") + ) + result = indexer(df) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "indexer", [lambda df: df.xs("a", level=0), lambda df: df.xs("a")] + ) + def test_xs_level0(self, indexer, four_level_index_dataframe): + df = four_level_index_dataframe + expected_values = [ + [-0.5109, -2.3358, -0.4645, 0.05076, 0.364], + [0.4473, 1.4152, 0.2834, 1.00661, 0.1744], + ] + expected_index = MultiIndex( + levels=[["b", "q"], [10.0032, 20.0], [4, 5]], + codes=[[0, 1], [0, 1], [1, 0]], + names=["two", "three", "four"], + ) + expected = DataFrame( + expected_values, index=expected_index, columns=list("ABCDE") + ) + + result = indexer(df) + tm.assert_frame_equal(result, expected) + + def test_xs_values(self, multiindex_dataframe_random_data): + df = multiindex_dataframe_random_data + result = df.xs(("bar", "two")).values + expected = df.values[4] + tm.assert_almost_equal(result, expected) + + def test_xs_loc_equality(self, multiindex_dataframe_random_data): + df = multiindex_dataframe_random_data + result = df.xs(("bar", "two")) + expected = df.loc[("bar", "two")] + tm.assert_series_equal(result, expected) + + def test_xs_IndexSlice_argument_not_implemented(self, frame_or_series): + # GH#35301 + + index = MultiIndex( + levels=[[("foo", "bar", 0), ("foo", "baz", 0), ("foo", "qux", 0)], [0, 1]], + codes=[[0, 0, 1, 1, 2, 2], [0, 1, 0, 1, 0, 1]], + ) + + obj = DataFrame(np.random.default_rng(2).standard_normal((6, 4)), index=index) + if frame_or_series is Series: + obj = obj[0] + + expected = obj.iloc[-2:].droplevel(0) + + result = obj.xs(IndexSlice[("foo", "qux", 0), :]) + tm.assert_equal(result, expected) + + result = obj.loc[IndexSlice[("foo", "qux", 0), :]] + tm.assert_equal(result, expected) + + def test_xs_levels_raises(self, frame_or_series): + obj = DataFrame({"A": [1, 2, 3]}) + if frame_or_series is Series: + obj = obj["A"] + + msg = "Index must be a MultiIndex" + with pytest.raises(TypeError, match=msg): + obj.xs(0, level="as") + + def test_xs_multiindex_droplevel_false(self): + # GH#19056 + mi = MultiIndex.from_tuples( + [("a", "x"), ("a", "y"), ("b", "x")], names=["level1", "level2"] + ) + df = DataFrame([[1, 2, 3]], columns=mi) + result = df.xs("a", axis=1, drop_level=False) + expected = DataFrame( + [[1, 2]], + columns=MultiIndex.from_tuples( + [("a", "x"), ("a", "y")], names=["level1", "level2"] + ), + ) + tm.assert_frame_equal(result, expected) + + def test_xs_droplevel_false(self): + # GH#19056 + df = DataFrame([[1, 2, 3]], columns=Index(["a", "b", "c"])) + result = df.xs("a", axis=1, drop_level=False) + expected = DataFrame({"a": [1]}) + tm.assert_frame_equal(result, expected) + + def test_xs_droplevel_false_view( + self, using_array_manager, using_copy_on_write, warn_copy_on_write + ): + # GH#37832 + df = DataFrame([[1, 2, 3]], columns=Index(["a", "b", "c"])) + result = df.xs("a", axis=1, drop_level=False) + # check that result still views the same data as df + assert np.shares_memory(result.iloc[:, 0]._values, df.iloc[:, 0]._values) + + with tm.assert_cow_warning(warn_copy_on_write): + df.iloc[0, 0] = 2 + if using_copy_on_write: + # with copy on write the subset is never modified + expected = DataFrame({"a": [1]}) + else: + # modifying original df also modifies result when having a single block + expected = DataFrame({"a": [2]}) + tm.assert_frame_equal(result, expected) + + # with mixed dataframe, modifying the parent doesn't modify result + # TODO the "split" path behaves differently here as with single block + df = DataFrame([[1, 2.5, "a"]], columns=Index(["a", "b", "c"])) + result = df.xs("a", axis=1, drop_level=False) + df.iloc[0, 0] = 2 + if using_copy_on_write: + # with copy on write the subset is never modified + expected = DataFrame({"a": [1]}) + elif using_array_manager: + # Here the behavior is consistent + expected = DataFrame({"a": [2]}) + else: + # FIXME: iloc does not update the array inplace using + # "split" path + expected = DataFrame({"a": [1]}) + tm.assert_frame_equal(result, expected) + + def test_xs_list_indexer_droplevel_false(self): + # GH#41760 + mi = MultiIndex.from_tuples([("x", "m", "a"), ("x", "n", "b"), ("y", "o", "c")]) + df = DataFrame([[1, 2, 3], [4, 5, 6]], columns=mi) + with pytest.raises(KeyError, match="y"): + df.xs(("x", "y"), drop_level=False, axis=1) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..245594bfdc9e72ff5cb3a4799e9055c7cd6b5a3e --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/__init__.py @@ -0,0 +1,7 @@ +""" +Test files dedicated to individual (stand-alone) DataFrame methods + +Ideally these files/tests should correspond 1-to-1 with tests.series.methods + +These may also present opportunities for sharing/de-duplicating test code. +""" diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_add_prefix_suffix.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_add_prefix_suffix.py new file mode 100644 index 0000000000000000000000000000000000000000..92d7cdd7990e168721610b7f52f653a69ac1e078 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_add_prefix_suffix.py @@ -0,0 +1,49 @@ +import pytest + +from pandas import Index +import pandas._testing as tm + + +def test_add_prefix_suffix(float_frame): + with_prefix = float_frame.add_prefix("foo#") + expected = Index([f"foo#{c}" for c in float_frame.columns]) + tm.assert_index_equal(with_prefix.columns, expected) + + with_suffix = float_frame.add_suffix("#foo") + expected = Index([f"{c}#foo" for c in float_frame.columns]) + tm.assert_index_equal(with_suffix.columns, expected) + + with_pct_prefix = float_frame.add_prefix("%") + expected = Index([f"%{c}" for c in float_frame.columns]) + tm.assert_index_equal(with_pct_prefix.columns, expected) + + with_pct_suffix = float_frame.add_suffix("%") + expected = Index([f"{c}%" for c in float_frame.columns]) + tm.assert_index_equal(with_pct_suffix.columns, expected) + + +def test_add_prefix_suffix_axis(float_frame): + # GH 47819 + with_prefix = float_frame.add_prefix("foo#", axis=0) + expected = Index([f"foo#{c}" for c in float_frame.index]) + tm.assert_index_equal(with_prefix.index, expected) + + with_prefix = float_frame.add_prefix("foo#", axis=1) + expected = Index([f"foo#{c}" for c in float_frame.columns]) + tm.assert_index_equal(with_prefix.columns, expected) + + with_pct_suffix = float_frame.add_suffix("#foo", axis=0) + expected = Index([f"{c}#foo" for c in float_frame.index]) + tm.assert_index_equal(with_pct_suffix.index, expected) + + with_pct_suffix = float_frame.add_suffix("#foo", axis=1) + expected = Index([f"{c}#foo" for c in float_frame.columns]) + tm.assert_index_equal(with_pct_suffix.columns, expected) + + +def test_add_prefix_suffix_invalid_axis(float_frame): + with pytest.raises(ValueError, match="No axis named 2 for object type DataFrame"): + float_frame.add_prefix("foo#", axis=2) + + with pytest.raises(ValueError, match="No axis named 2 for object type DataFrame"): + float_frame.add_suffix("foo#", axis=2) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_align.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_align.py new file mode 100644 index 0000000000000000000000000000000000000000..5a9c47866dae8102fdf51541aaae5c61eeb7e84c --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_align.py @@ -0,0 +1,484 @@ +from datetime import timezone + +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + DataFrame, + Index, + Series, + date_range, +) +import pandas._testing as tm + + +class TestDataFrameAlign: + def test_align_asfreq_method_raises(self): + df = DataFrame({"A": [1, np.nan, 2]}) + msg = "Invalid fill method" + msg2 = "The 'method', 'limit', and 'fill_axis' keywords" + with pytest.raises(ValueError, match=msg): + with tm.assert_produces_warning(FutureWarning, match=msg2): + df.align(df.iloc[::-1], method="asfreq") + + def test_frame_align_aware(self): + idx1 = date_range("2001", periods=5, freq="h", tz="US/Eastern") + idx2 = date_range("2001", periods=5, freq="2h", tz="US/Eastern") + df1 = DataFrame(np.random.default_rng(2).standard_normal((len(idx1), 3)), idx1) + df2 = DataFrame(np.random.default_rng(2).standard_normal((len(idx2), 3)), idx2) + new1, new2 = df1.align(df2) + assert df1.index.tz == new1.index.tz + assert df2.index.tz == new2.index.tz + + # different timezones convert to UTC + + # frame with frame + df1_central = df1.tz_convert("US/Central") + new1, new2 = df1.align(df1_central) + assert new1.index.tz is timezone.utc + assert new2.index.tz is timezone.utc + + # frame with Series + new1, new2 = df1.align(df1_central[0], axis=0) + assert new1.index.tz is timezone.utc + assert new2.index.tz is timezone.utc + + df1[0].align(df1_central, axis=0) + assert new1.index.tz is timezone.utc + assert new2.index.tz is timezone.utc + + def test_align_float(self, float_frame, using_copy_on_write): + af, bf = float_frame.align(float_frame) + assert af._mgr is not float_frame._mgr + + af, bf = float_frame.align(float_frame, copy=False) + if not using_copy_on_write: + assert af._mgr is float_frame._mgr + else: + assert af._mgr is not float_frame._mgr + + # axis = 0 + other = float_frame.iloc[:-5, :3] + af, bf = float_frame.align(other, axis=0, fill_value=-1) + + tm.assert_index_equal(bf.columns, other.columns) + + # test fill value + join_idx = float_frame.index.join(other.index) + diff_a = float_frame.index.difference(join_idx) + diff_a_vals = af.reindex(diff_a).values + assert (diff_a_vals == -1).all() + + af, bf = float_frame.align(other, join="right", axis=0) + tm.assert_index_equal(bf.columns, other.columns) + tm.assert_index_equal(bf.index, other.index) + tm.assert_index_equal(af.index, other.index) + + # axis = 1 + other = float_frame.iloc[:-5, :3].copy() + af, bf = float_frame.align(other, axis=1) + tm.assert_index_equal(bf.columns, float_frame.columns) + tm.assert_index_equal(bf.index, other.index) + + # test fill value + join_idx = float_frame.index.join(other.index) + diff_a = float_frame.index.difference(join_idx) + diff_a_vals = af.reindex(diff_a).values + + assert (diff_a_vals == -1).all() + + af, bf = float_frame.align(other, join="inner", axis=1) + tm.assert_index_equal(bf.columns, other.columns) + + msg = ( + "The 'method', 'limit', and 'fill_axis' keywords in DataFrame.align " + "are deprecated" + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + af, bf = float_frame.align(other, join="inner", axis=1, method="pad") + tm.assert_index_equal(bf.columns, other.columns) + + msg = ( + "The 'method', 'limit', and 'fill_axis' keywords in DataFrame.align " + "are deprecated" + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + af, bf = float_frame.align( + other.iloc[:, 0], join="inner", axis=1, method=None, fill_value=None + ) + tm.assert_index_equal(bf.index, Index([]).astype(bf.index.dtype)) + + msg = ( + "The 'method', 'limit', and 'fill_axis' keywords in DataFrame.align " + "are deprecated" + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + af, bf = float_frame.align( + other.iloc[:, 0], join="inner", axis=1, method=None, fill_value=0 + ) + tm.assert_index_equal(bf.index, Index([]).astype(bf.index.dtype)) + + # Try to align DataFrame to Series along bad axis + msg = "No axis named 2 for object type DataFrame" + with pytest.raises(ValueError, match=msg): + float_frame.align(af.iloc[0, :3], join="inner", axis=2) + + def test_align_frame_with_series(self, float_frame): + # align dataframe to series with broadcast or not + idx = float_frame.index + s = Series(range(len(idx)), index=idx) + + left, right = float_frame.align(s, axis=0) + tm.assert_index_equal(left.index, float_frame.index) + tm.assert_index_equal(right.index, float_frame.index) + assert isinstance(right, Series) + + msg = "The 'broadcast_axis' keyword in DataFrame.align is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + left, right = float_frame.align(s, broadcast_axis=1) + tm.assert_index_equal(left.index, float_frame.index) + expected = {c: s for c in float_frame.columns} + expected = DataFrame( + expected, index=float_frame.index, columns=float_frame.columns + ) + tm.assert_frame_equal(right, expected) + + def test_align_series_condition(self): + # see gh-9558 + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + result = df[df["a"] == 2] + expected = DataFrame([[2, 5]], index=[1], columns=["a", "b"]) + tm.assert_frame_equal(result, expected) + + result = df.where(df["a"] == 2, 0) + expected = DataFrame({"a": [0, 2, 0], "b": [0, 5, 0]}) + tm.assert_frame_equal(result, expected) + + def test_align_int(self, int_frame): + # test other non-float types + other = DataFrame(index=range(5), columns=["A", "B", "C"]) + + msg = ( + "The 'method', 'limit', and 'fill_axis' keywords in DataFrame.align " + "are deprecated" + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + af, bf = int_frame.align(other, join="inner", axis=1, method="pad") + tm.assert_index_equal(bf.columns, other.columns) + + def test_align_mixed_type(self, float_string_frame): + msg = ( + "The 'method', 'limit', and 'fill_axis' keywords in DataFrame.align " + "are deprecated" + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + af, bf = float_string_frame.align( + float_string_frame, join="inner", axis=1, method="pad" + ) + tm.assert_index_equal(bf.columns, float_string_frame.columns) + + def test_align_mixed_float(self, mixed_float_frame): + # mixed floats/ints + other = DataFrame(index=range(5), columns=["A", "B", "C"]) + + msg = ( + "The 'method', 'limit', and 'fill_axis' keywords in DataFrame.align " + "are deprecated" + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + af, bf = mixed_float_frame.align( + other.iloc[:, 0], join="inner", axis=1, method=None, fill_value=0 + ) + tm.assert_index_equal(bf.index, Index([])) + + def test_align_mixed_int(self, mixed_int_frame): + other = DataFrame(index=range(5), columns=["A", "B", "C"]) + + msg = ( + "The 'method', 'limit', and 'fill_axis' keywords in DataFrame.align " + "are deprecated" + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + af, bf = mixed_int_frame.align( + other.iloc[:, 0], join="inner", axis=1, method=None, fill_value=0 + ) + tm.assert_index_equal(bf.index, Index([])) + + @pytest.mark.parametrize( + "l_ordered,r_ordered,expected", + [ + [True, True, pd.CategoricalIndex], + [True, False, Index], + [False, True, Index], + [False, False, pd.CategoricalIndex], + ], + ) + def test_align_categorical(self, l_ordered, r_ordered, expected): + # GH-28397 + df_1 = DataFrame( + { + "A": np.arange(6, dtype="int64"), + "B": Series(list("aabbca")).astype( + pd.CategoricalDtype(list("cab"), ordered=l_ordered) + ), + } + ).set_index("B") + df_2 = DataFrame( + { + "A": np.arange(5, dtype="int64"), + "B": Series(list("babca")).astype( + pd.CategoricalDtype(list("cab"), ordered=r_ordered) + ), + } + ).set_index("B") + + aligned_1, aligned_2 = df_1.align(df_2) + assert isinstance(aligned_1.index, expected) + assert isinstance(aligned_2.index, expected) + tm.assert_index_equal(aligned_1.index, aligned_2.index) + + def test_align_multiindex(self): + # GH#10665 + # same test cases as test_align_multiindex in test_series.py + + midx = pd.MultiIndex.from_product( + [range(2), range(3), range(2)], names=("a", "b", "c") + ) + idx = Index(range(2), name="b") + df1 = DataFrame(np.arange(12, dtype="int64"), index=midx) + df2 = DataFrame(np.arange(2, dtype="int64"), index=idx) + + # these must be the same results (but flipped) + res1l, res1r = df1.align(df2, join="left") + res2l, res2r = df2.align(df1, join="right") + + expl = df1 + tm.assert_frame_equal(expl, res1l) + tm.assert_frame_equal(expl, res2r) + expr = DataFrame([0, 0, 1, 1, np.nan, np.nan] * 2, index=midx) + tm.assert_frame_equal(expr, res1r) + tm.assert_frame_equal(expr, res2l) + + res1l, res1r = df1.align(df2, join="right") + res2l, res2r = df2.align(df1, join="left") + + exp_idx = pd.MultiIndex.from_product( + [range(2), range(2), range(2)], names=("a", "b", "c") + ) + expl = DataFrame([0, 1, 2, 3, 6, 7, 8, 9], index=exp_idx) + tm.assert_frame_equal(expl, res1l) + tm.assert_frame_equal(expl, res2r) + expr = DataFrame([0, 0, 1, 1] * 2, index=exp_idx) + tm.assert_frame_equal(expr, res1r) + tm.assert_frame_equal(expr, res2l) + + def test_align_series_combinations(self): + df = DataFrame({"a": [1, 3, 5], "b": [1, 3, 5]}, index=list("ACE")) + s = Series([1, 2, 4], index=list("ABD"), name="x") + + # frame + series + res1, res2 = df.align(s, axis=0) + exp1 = DataFrame( + {"a": [1, np.nan, 3, np.nan, 5], "b": [1, np.nan, 3, np.nan, 5]}, + index=list("ABCDE"), + ) + exp2 = Series([1, 2, np.nan, 4, np.nan], index=list("ABCDE"), name="x") + + tm.assert_frame_equal(res1, exp1) + tm.assert_series_equal(res2, exp2) + + # series + frame + res1, res2 = s.align(df) + tm.assert_series_equal(res1, exp2) + tm.assert_frame_equal(res2, exp1) + + def test_multiindex_align_to_series_with_common_index_level(self): + # GH-46001 + foo_index = Index([1, 2, 3], name="foo") + bar_index = Index([1, 2], name="bar") + + series = Series([1, 2], index=bar_index, name="foo_series") + df = DataFrame( + {"col": np.arange(6)}, + index=pd.MultiIndex.from_product([foo_index, bar_index]), + ) + + expected_r = Series([1, 2] * 3, index=df.index, name="foo_series") + result_l, result_r = df.align(series, axis=0) + + tm.assert_frame_equal(result_l, df) + tm.assert_series_equal(result_r, expected_r) + + def test_multiindex_align_to_series_with_common_index_level_missing_in_left(self): + # GH-46001 + foo_index = Index([1, 2, 3], name="foo") + bar_index = Index([1, 2], name="bar") + + series = Series( + [1, 2, 3, 4], index=Index([1, 2, 3, 4], name="bar"), name="foo_series" + ) + df = DataFrame( + {"col": np.arange(6)}, + index=pd.MultiIndex.from_product([foo_index, bar_index]), + ) + + expected_r = Series([1, 2] * 3, index=df.index, name="foo_series") + result_l, result_r = df.align(series, axis=0) + + tm.assert_frame_equal(result_l, df) + tm.assert_series_equal(result_r, expected_r) + + def test_multiindex_align_to_series_with_common_index_level_missing_in_right(self): + # GH-46001 + foo_index = Index([1, 2, 3], name="foo") + bar_index = Index([1, 2, 3, 4], name="bar") + + series = Series([1, 2], index=Index([1, 2], name="bar"), name="foo_series") + df = DataFrame( + {"col": np.arange(12)}, + index=pd.MultiIndex.from_product([foo_index, bar_index]), + ) + + expected_r = Series( + [1, 2, np.nan, np.nan] * 3, index=df.index, name="foo_series" + ) + result_l, result_r = df.align(series, axis=0) + + tm.assert_frame_equal(result_l, df) + tm.assert_series_equal(result_r, expected_r) + + def test_multiindex_align_to_series_with_common_index_level_missing_in_both(self): + # GH-46001 + foo_index = Index([1, 2, 3], name="foo") + bar_index = Index([1, 3, 4], name="bar") + + series = Series( + [1, 2, 3], index=Index([1, 2, 4], name="bar"), name="foo_series" + ) + df = DataFrame( + {"col": np.arange(9)}, + index=pd.MultiIndex.from_product([foo_index, bar_index]), + ) + + expected_r = Series([1, np.nan, 3] * 3, index=df.index, name="foo_series") + result_l, result_r = df.align(series, axis=0) + + tm.assert_frame_equal(result_l, df) + tm.assert_series_equal(result_r, expected_r) + + def test_multiindex_align_to_series_with_common_index_level_non_unique_cols(self): + # GH-46001 + foo_index = Index([1, 2, 3], name="foo") + bar_index = Index([1, 2], name="bar") + + series = Series([1, 2], index=bar_index, name="foo_series") + df = DataFrame( + np.arange(18).reshape(6, 3), + index=pd.MultiIndex.from_product([foo_index, bar_index]), + ) + df.columns = ["cfoo", "cbar", "cfoo"] + + expected = Series([1, 2] * 3, index=df.index, name="foo_series") + result_left, result_right = df.align(series, axis=0) + + tm.assert_series_equal(result_right, expected) + tm.assert_index_equal(result_left.columns, df.columns) + + def test_missing_axis_specification_exception(self): + df = DataFrame(np.arange(50).reshape((10, 5))) + series = Series(np.arange(5)) + + with pytest.raises(ValueError, match=r"axis=0 or 1"): + df.align(series) + + @pytest.mark.parametrize("method", ["pad", "bfill"]) + @pytest.mark.parametrize("axis", [0, 1, None]) + @pytest.mark.parametrize("fill_axis", [0, 1]) + @pytest.mark.parametrize("how", ["inner", "outer", "left", "right"]) + @pytest.mark.parametrize( + "left_slice", + [ + [slice(4), slice(10)], + [slice(0), slice(0)], + ], + ) + @pytest.mark.parametrize( + "right_slice", + [ + [slice(2, None), slice(6, None)], + [slice(0), slice(0)], + ], + ) + @pytest.mark.parametrize("limit", [1, None]) + def test_align_fill_method( + self, how, method, axis, fill_axis, float_frame, left_slice, right_slice, limit + ): + frame = float_frame + left = frame.iloc[left_slice[0], left_slice[1]] + right = frame.iloc[right_slice[0], right_slice[1]] + + msg = ( + "The 'method', 'limit', and 'fill_axis' keywords in DataFrame.align " + "are deprecated" + ) + + with tm.assert_produces_warning(FutureWarning, match=msg): + aa, ab = left.align( + right, + axis=axis, + join=how, + method=method, + limit=limit, + fill_axis=fill_axis, + ) + + join_index, join_columns = None, None + + ea, eb = left, right + if axis is None or axis == 0: + join_index = left.index.join(right.index, how=how) + ea = ea.reindex(index=join_index) + eb = eb.reindex(index=join_index) + + if axis is None or axis == 1: + join_columns = left.columns.join(right.columns, how=how) + ea = ea.reindex(columns=join_columns) + eb = eb.reindex(columns=join_columns) + + msg = "DataFrame.fillna with 'method' is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + ea = ea.fillna(axis=fill_axis, method=method, limit=limit) + eb = eb.fillna(axis=fill_axis, method=method, limit=limit) + + tm.assert_frame_equal(aa, ea) + tm.assert_frame_equal(ab, eb) + + def test_align_series_check_copy(self): + # GH# + df = DataFrame({0: [1, 2]}) + ser = Series([1], name=0) + expected = ser.copy() + result, other = df.align(ser, axis=1) + ser.iloc[0] = 100 + tm.assert_series_equal(other, expected) + + def test_align_identical_different_object(self): + # GH#51032 + df = DataFrame({"a": [1, 2]}) + ser = Series([3, 4]) + result, result2 = df.align(ser, axis=0) + tm.assert_frame_equal(result, df) + tm.assert_series_equal(result2, ser) + assert df is not result + assert ser is not result2 + + def test_align_identical_different_object_columns(self): + # GH#51032 + df = DataFrame({"a": [1, 2]}) + ser = Series([1], index=["a"]) + result, result2 = df.align(ser, axis=1) + tm.assert_frame_equal(result, df) + tm.assert_series_equal(result2, ser) + assert df is not result + assert ser is not result2 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_asfreq.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_asfreq.py new file mode 100644 index 0000000000000000000000000000000000000000..ef72ca1ac86b9a6eb395a5a64bbfb99aef76a02a --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_asfreq.py @@ -0,0 +1,263 @@ +from datetime import datetime + +import numpy as np +import pytest + +from pandas._libs.tslibs.offsets import MonthEnd + +from pandas import ( + DataFrame, + DatetimeIndex, + Series, + date_range, + period_range, + to_datetime, +) +import pandas._testing as tm + +from pandas.tseries import offsets + + +class TestAsFreq: + @pytest.fixture(params=["s", "ms", "us", "ns"]) + def unit(self, request): + return request.param + + def test_asfreq2(self, frame_or_series): + ts = frame_or_series( + [0.0, 1.0, 2.0], + index=DatetimeIndex( + [ + datetime(2009, 10, 30), + datetime(2009, 11, 30), + datetime(2009, 12, 31), + ], + dtype="M8[ns]", + freq="BME", + ), + ) + + daily_ts = ts.asfreq("B") + monthly_ts = daily_ts.asfreq("BME") + tm.assert_equal(monthly_ts, ts) + + daily_ts = ts.asfreq("B", method="pad") + monthly_ts = daily_ts.asfreq("BME") + tm.assert_equal(monthly_ts, ts) + + daily_ts = ts.asfreq(offsets.BDay()) + monthly_ts = daily_ts.asfreq(offsets.BMonthEnd()) + tm.assert_equal(monthly_ts, ts) + + result = ts[:0].asfreq("ME") + assert len(result) == 0 + assert result is not ts + + if frame_or_series is Series: + daily_ts = ts.asfreq("D", fill_value=-1) + result = daily_ts.value_counts().sort_index() + expected = Series( + [60, 1, 1, 1], index=[-1.0, 2.0, 1.0, 0.0], name="count" + ).sort_index() + tm.assert_series_equal(result, expected) + + def test_asfreq_datetimeindex_empty(self, frame_or_series): + # GH#14320 + index = DatetimeIndex(["2016-09-29 11:00"]) + expected = frame_or_series(index=index, dtype=object).asfreq("h") + result = frame_or_series([3], index=index.copy()).asfreq("h") + tm.assert_index_equal(expected.index, result.index) + + @pytest.mark.parametrize("tz", ["US/Eastern", "dateutil/US/Eastern"]) + def test_tz_aware_asfreq_smoke(self, tz, frame_or_series): + dr = date_range("2011-12-01", "2012-07-20", freq="D", tz=tz) + + obj = frame_or_series( + np.random.default_rng(2).standard_normal(len(dr)), index=dr + ) + + # it works! + obj.asfreq("min") + + def test_asfreq_normalize(self, frame_or_series): + rng = date_range("1/1/2000 09:30", periods=20) + norm = date_range("1/1/2000", periods=20) + + vals = np.random.default_rng(2).standard_normal((20, 3)) + + obj = DataFrame(vals, index=rng) + expected = DataFrame(vals, index=norm) + if frame_or_series is Series: + obj = obj[0] + expected = expected[0] + + result = obj.asfreq("D", normalize=True) + tm.assert_equal(result, expected) + + def test_asfreq_keep_index_name(self, frame_or_series): + # GH#9854 + index_name = "bar" + index = date_range("20130101", periods=20, name=index_name) + obj = DataFrame(list(range(20)), columns=["foo"], index=index) + obj = tm.get_obj(obj, frame_or_series) + + assert index_name == obj.index.name + assert index_name == obj.asfreq("10D").index.name + + def test_asfreq_ts(self, frame_or_series): + index = period_range(freq="Y", start="1/1/2001", end="12/31/2010") + obj = DataFrame( + np.random.default_rng(2).standard_normal((len(index), 3)), index=index + ) + obj = tm.get_obj(obj, frame_or_series) + + result = obj.asfreq("D", how="end") + exp_index = index.asfreq("D", how="end") + assert len(result) == len(obj) + tm.assert_index_equal(result.index, exp_index) + + result = obj.asfreq("D", how="start") + exp_index = index.asfreq("D", how="start") + assert len(result) == len(obj) + tm.assert_index_equal(result.index, exp_index) + + def test_asfreq_resample_set_correct_freq(self, frame_or_series): + # GH#5613 + # we test if .asfreq() and .resample() set the correct value for .freq + dti = to_datetime(["2012-01-01", "2012-01-02", "2012-01-03"]) + obj = DataFrame({"col": [1, 2, 3]}, index=dti) + obj = tm.get_obj(obj, frame_or_series) + + # testing the settings before calling .asfreq() and .resample() + assert obj.index.freq is None + assert obj.index.inferred_freq == "D" + + # does .asfreq() set .freq correctly? + assert obj.asfreq("D").index.freq == "D" + + # does .resample() set .freq correctly? + assert obj.resample("D").asfreq().index.freq == "D" + + def test_asfreq_empty(self, datetime_frame): + # test does not blow up on length-0 DataFrame + zero_length = datetime_frame.reindex([]) + result = zero_length.asfreq("BME") + assert result is not zero_length + + def test_asfreq(self, datetime_frame): + offset_monthly = datetime_frame.asfreq(offsets.BMonthEnd()) + rule_monthly = datetime_frame.asfreq("BME") + + tm.assert_frame_equal(offset_monthly, rule_monthly) + + rule_monthly.asfreq("B", method="pad") + # TODO: actually check that this worked. + + # don't forget! + rule_monthly.asfreq("B", method="pad") + + def test_asfreq_datetimeindex(self): + df = DataFrame( + {"A": [1, 2, 3]}, + index=[datetime(2011, 11, 1), datetime(2011, 11, 2), datetime(2011, 11, 3)], + ) + df = df.asfreq("B") + assert isinstance(df.index, DatetimeIndex) + + ts = df["A"].asfreq("B") + assert isinstance(ts.index, DatetimeIndex) + + def test_asfreq_fillvalue(self): + # test for fill value during upsampling, related to issue 3715 + + # setup + rng = date_range("1/1/2016", periods=10, freq="2s") + # Explicit cast to 'float' to avoid implicit cast when setting None + ts = Series(np.arange(len(rng)), index=rng, dtype="float") + df = DataFrame({"one": ts}) + + # insert pre-existing missing value + df.loc["2016-01-01 00:00:08", "one"] = None + + actual_df = df.asfreq(freq="1s", fill_value=9.0) + expected_df = df.asfreq(freq="1s").fillna(9.0) + expected_df.loc["2016-01-01 00:00:08", "one"] = None + tm.assert_frame_equal(expected_df, actual_df) + + expected_series = ts.asfreq(freq="1s").fillna(9.0) + actual_series = ts.asfreq(freq="1s", fill_value=9.0) + tm.assert_series_equal(expected_series, actual_series) + + def test_asfreq_with_date_object_index(self, frame_or_series): + rng = date_range("1/1/2000", periods=20) + ts = frame_or_series(np.random.default_rng(2).standard_normal(20), index=rng) + + ts2 = ts.copy() + ts2.index = [x.date() for x in ts2.index] + + result = ts2.asfreq("4h", method="ffill") + expected = ts.asfreq("4h", method="ffill") + tm.assert_equal(result, expected) + + def test_asfreq_with_unsorted_index(self, frame_or_series): + # GH#39805 + # Test that rows are not dropped when the datetime index is out of order + index = to_datetime(["2021-01-04", "2021-01-02", "2021-01-03", "2021-01-01"]) + result = frame_or_series(range(4), index=index) + + expected = result.reindex(sorted(index)) + expected.index = expected.index._with_freq("infer") + + result = result.asfreq("D") + tm.assert_equal(result, expected) + + def test_asfreq_after_normalize(self, unit): + # https://github.com/pandas-dev/pandas/issues/50727 + result = DatetimeIndex( + date_range("2000", periods=2).as_unit(unit).normalize(), freq="D" + ) + expected = DatetimeIndex(["2000-01-01", "2000-01-02"], freq="D").as_unit(unit) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "freq, freq_half", + [ + ("2ME", "ME"), + (MonthEnd(2), MonthEnd(1)), + ], + ) + def test_asfreq_2ME(self, freq, freq_half): + index = date_range("1/1/2000", periods=6, freq=freq_half) + df = DataFrame({"s": Series([0.0, 1.0, 2.0, 3.0, 4.0, 5.0], index=index)}) + expected = df.asfreq(freq=freq) + + index = date_range("1/1/2000", periods=3, freq=freq) + result = DataFrame({"s": Series([0.0, 2.0, 4.0], index=index)}) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "freq, freq_depr", + [ + ("2ME", "2M"), + ("2QE", "2Q"), + ("2QE-SEP", "2Q-SEP"), + ("1BQE", "1BQ"), + ("2BQE-SEP", "2BQ-SEP"), + ("1YE", "1Y"), + ("2YE-MAR", "2Y-MAR"), + ("1YE", "1A"), + ("2YE-MAR", "2A-MAR"), + ("2BYE-MAR", "2BA-MAR"), + ], + ) + def test_asfreq_frequency_M_Q_Y_A_deprecated(self, freq, freq_depr): + # GH#9586, #55978 + depr_msg = f"'{freq_depr[1:]}' is deprecated and will be removed " + f"in a future version, please use '{freq[1:]}' instead." + + index = date_range("1/1/2000", periods=4, freq=f"{freq[1:]}") + df = DataFrame({"s": Series([0.0, 1.0, 2.0, 3.0], index=index)}) + expected = df.asfreq(freq=freq) + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + result = df.asfreq(freq=freq_depr) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_asof.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_asof.py new file mode 100644 index 0000000000000000000000000000000000000000..4a8adf89b3aef83001f6bb7669d8a9eae12529ea --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_asof.py @@ -0,0 +1,198 @@ +import numpy as np +import pytest + +from pandas._libs.tslibs import IncompatibleFrequency + +from pandas import ( + DataFrame, + Period, + Series, + Timestamp, + date_range, + period_range, + to_datetime, +) +import pandas._testing as tm + + +@pytest.fixture +def date_range_frame(): + """ + Fixture for DataFrame of ints with date_range index + + Columns are ['A', 'B']. + """ + N = 50 + rng = date_range("1/1/1990", periods=N, freq="53s") + return DataFrame({"A": np.arange(N), "B": np.arange(N)}, index=rng) + + +class TestFrameAsof: + def test_basic(self, date_range_frame): + # Explicitly cast to float to avoid implicit cast when setting np.nan + df = date_range_frame.astype({"A": "float"}) + N = 50 + df.loc[df.index[15:30], "A"] = np.nan + dates = date_range("1/1/1990", periods=N * 3, freq="25s") + + result = df.asof(dates) + assert result.notna().all(1).all() + lb = df.index[14] + ub = df.index[30] + + dates = list(dates) + + result = df.asof(dates) + assert result.notna().all(1).all() + + mask = (result.index >= lb) & (result.index < ub) + rs = result[mask] + assert (rs == 14).all(1).all() + + def test_subset(self, date_range_frame): + N = 10 + # explicitly cast to float to avoid implicit upcast when setting to np.nan + df = date_range_frame.iloc[:N].copy().astype({"A": "float"}) + df.loc[df.index[4:8], "A"] = np.nan + dates = date_range("1/1/1990", periods=N * 3, freq="25s") + + # with a subset of A should be the same + result = df.asof(dates, subset="A") + expected = df.asof(dates) + tm.assert_frame_equal(result, expected) + + # same with A/B + result = df.asof(dates, subset=["A", "B"]) + expected = df.asof(dates) + tm.assert_frame_equal(result, expected) + + # B gives df.asof + result = df.asof(dates, subset="B") + expected = df.resample("25s", closed="right").ffill().reindex(dates) + expected.iloc[20:] = 9 + # no "missing", so "B" can retain int dtype (df["A"].dtype platform-dependent) + expected["B"] = expected["B"].astype(df["B"].dtype) + + tm.assert_frame_equal(result, expected) + + def test_missing(self, date_range_frame): + # GH 15118 + # no match found - `where` value before earliest date in index + N = 10 + # Cast to 'float64' to avoid upcast when introducing nan in df.asof + df = date_range_frame.iloc[:N].copy().astype("float64") + + result = df.asof("1989-12-31") + + expected = Series( + index=["A", "B"], name=Timestamp("1989-12-31"), dtype=np.float64 + ) + tm.assert_series_equal(result, expected) + + result = df.asof(to_datetime(["1989-12-31"])) + expected = DataFrame( + index=to_datetime(["1989-12-31"]), columns=["A", "B"], dtype="float64" + ) + tm.assert_frame_equal(result, expected) + + # Check that we handle PeriodIndex correctly, dont end up with + # period.ordinal for series name + df = df.to_period("D") + result = df.asof("1989-12-31") + assert isinstance(result.name, Period) + + def test_asof_all_nans(self, frame_or_series): + # GH 15713 + # DataFrame/Series is all nans + result = frame_or_series([np.nan]).asof([0]) + expected = frame_or_series([np.nan]) + tm.assert_equal(result, expected) + + def test_all_nans(self, date_range_frame): + # GH 15713 + # DataFrame is all nans + + # testing non-default indexes, multiple inputs + N = 150 + rng = date_range_frame.index + dates = date_range("1/1/1990", periods=N, freq="25s") + result = DataFrame(np.nan, index=rng, columns=["A"]).asof(dates) + expected = DataFrame(np.nan, index=dates, columns=["A"]) + tm.assert_frame_equal(result, expected) + + # testing multiple columns + dates = date_range("1/1/1990", periods=N, freq="25s") + result = DataFrame(np.nan, index=rng, columns=["A", "B", "C"]).asof(dates) + expected = DataFrame(np.nan, index=dates, columns=["A", "B", "C"]) + tm.assert_frame_equal(result, expected) + + # testing scalar input + result = DataFrame(np.nan, index=[1, 2], columns=["A", "B"]).asof([3]) + expected = DataFrame(np.nan, index=[3], columns=["A", "B"]) + tm.assert_frame_equal(result, expected) + + result = DataFrame(np.nan, index=[1, 2], columns=["A", "B"]).asof(3) + expected = Series(np.nan, index=["A", "B"], name=3) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize( + "stamp,expected", + [ + ( + Timestamp("2018-01-01 23:22:43.325+00:00"), + Series(2, name=Timestamp("2018-01-01 23:22:43.325+00:00")), + ), + ( + Timestamp("2018-01-01 22:33:20.682+01:00"), + Series(1, name=Timestamp("2018-01-01 22:33:20.682+01:00")), + ), + ], + ) + def test_time_zone_aware_index(self, stamp, expected): + # GH21194 + # Testing awareness of DataFrame index considering different + # UTC and timezone + df = DataFrame( + data=[1, 2], + index=[ + Timestamp("2018-01-01 21:00:05.001+00:00"), + Timestamp("2018-01-01 22:35:10.550+00:00"), + ], + ) + + result = df.asof(stamp) + tm.assert_series_equal(result, expected) + + def test_is_copy(self, date_range_frame): + # GH-27357, GH-30784: ensure the result of asof is an actual copy and + # doesn't track the parent dataframe / doesn't give SettingWithCopy warnings + df = date_range_frame.astype({"A": "float"}) + N = 50 + df.loc[df.index[15:30], "A"] = np.nan + dates = date_range("1/1/1990", periods=N * 3, freq="25s") + + result = df.asof(dates) + + with tm.assert_produces_warning(None): + result["C"] = 1 + + def test_asof_periodindex_mismatched_freq(self): + N = 50 + rng = period_range("1/1/1990", periods=N, freq="h") + df = DataFrame(np.random.default_rng(2).standard_normal(N), index=rng) + + # Mismatched freq + msg = "Input has different freq" + with pytest.raises(IncompatibleFrequency, match=msg): + df.asof(rng.asfreq("D")) + + def test_asof_preserves_bool_dtype(self): + # GH#16063 was casting bools to floats + dti = date_range("2017-01-01", freq="MS", periods=4) + ser = Series([True, False, True], index=dti[:-1]) + + ts = dti[-1] + res = ser.asof([ts]) + + expected = Series([True], index=[ts]) + tm.assert_series_equal(res, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_assign.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_assign.py new file mode 100644 index 0000000000000000000000000000000000000000..0ae501d43e74252a420acf96b9428ab4b8f5f211 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_assign.py @@ -0,0 +1,84 @@ +import pytest + +from pandas import DataFrame +import pandas._testing as tm + + +class TestAssign: + def test_assign(self): + df = DataFrame({"A": [1, 2, 3], "B": [4, 5, 6]}) + original = df.copy() + result = df.assign(C=df.B / df.A) + expected = df.copy() + expected["C"] = [4, 2.5, 2] + tm.assert_frame_equal(result, expected) + + # lambda syntax + result = df.assign(C=lambda x: x.B / x.A) + tm.assert_frame_equal(result, expected) + + # original is unmodified + tm.assert_frame_equal(df, original) + + # Non-Series array-like + result = df.assign(C=[4, 2.5, 2]) + tm.assert_frame_equal(result, expected) + # original is unmodified + tm.assert_frame_equal(df, original) + + result = df.assign(B=df.B / df.A) + expected = expected.drop("B", axis=1).rename(columns={"C": "B"}) + tm.assert_frame_equal(result, expected) + + # overwrite + result = df.assign(A=df.A + df.B) + expected = df.copy() + expected["A"] = [5, 7, 9] + tm.assert_frame_equal(result, expected) + + # lambda + result = df.assign(A=lambda x: x.A + x.B) + tm.assert_frame_equal(result, expected) + + def test_assign_multiple(self): + df = DataFrame([[1, 4], [2, 5], [3, 6]], columns=["A", "B"]) + result = df.assign(C=[7, 8, 9], D=df.A, E=lambda x: x.B) + expected = DataFrame( + [[1, 4, 7, 1, 4], [2, 5, 8, 2, 5], [3, 6, 9, 3, 6]], columns=list("ABCDE") + ) + tm.assert_frame_equal(result, expected) + + def test_assign_order(self): + # GH 9818 + df = DataFrame([[1, 2], [3, 4]], columns=["A", "B"]) + result = df.assign(D=df.A + df.B, C=df.A - df.B) + + expected = DataFrame([[1, 2, 3, -1], [3, 4, 7, -1]], columns=list("ABDC")) + tm.assert_frame_equal(result, expected) + result = df.assign(C=df.A - df.B, D=df.A + df.B) + + expected = DataFrame([[1, 2, -1, 3], [3, 4, -1, 7]], columns=list("ABCD")) + + tm.assert_frame_equal(result, expected) + + def test_assign_bad(self): + df = DataFrame({"A": [1, 2, 3], "B": [4, 5, 6]}) + + # non-keyword argument + msg = r"assign\(\) takes 1 positional argument but 2 were given" + with pytest.raises(TypeError, match=msg): + df.assign(lambda x: x.A) + msg = "'DataFrame' object has no attribute 'C'" + with pytest.raises(AttributeError, match=msg): + df.assign(C=df.A, D=df.A + df.C) + + def test_assign_dependent(self): + df = DataFrame({"A": [1, 2], "B": [3, 4]}) + + result = df.assign(C=df.A, D=lambda x: x["A"] + x["C"]) + expected = DataFrame([[1, 3, 1, 2], [2, 4, 2, 4]], columns=list("ABCD")) + tm.assert_frame_equal(result, expected) + + result = df.assign(C=lambda df: df.A, D=lambda df: df["A"] + df["C"]) + expected = DataFrame([[1, 3, 1, 2], [2, 4, 2, 4]], columns=list("ABCD")) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_astype.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_astype.py new file mode 100644 index 0000000000000000000000000000000000000000..938f9cfcde3f834a3788dff186cd0dfff3c093d1 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_astype.py @@ -0,0 +1,924 @@ +import re + +import numpy as np +import pytest + +from pandas._config import using_string_dtype + +import pandas.util._test_decorators as td + +import pandas as pd +from pandas import ( + Categorical, + CategoricalDtype, + DataFrame, + DatetimeTZDtype, + Index, + Interval, + IntervalDtype, + NaT, + Series, + Timedelta, + Timestamp, + concat, + date_range, + option_context, +) +import pandas._testing as tm + + +def _check_cast(df, v): + """ + Check if all dtypes of df are equal to v + """ + assert all(s.dtype.name == v for _, s in df.items()) + + +class TestAstype: + def test_astype_float(self, float_frame): + casted = float_frame.astype(int) + expected = DataFrame( + float_frame.values.astype(int), + index=float_frame.index, + columns=float_frame.columns, + ) + tm.assert_frame_equal(casted, expected) + + casted = float_frame.astype(np.int32) + expected = DataFrame( + float_frame.values.astype(np.int32), + index=float_frame.index, + columns=float_frame.columns, + ) + tm.assert_frame_equal(casted, expected) + + float_frame["foo"] = "5" + casted = float_frame.astype(int) + expected = DataFrame( + float_frame.values.astype(int), + index=float_frame.index, + columns=float_frame.columns, + ) + tm.assert_frame_equal(casted, expected) + + def test_astype_mixed_float(self, mixed_float_frame): + # mixed casting + casted = mixed_float_frame.reindex(columns=["A", "B"]).astype("float32") + _check_cast(casted, "float32") + + casted = mixed_float_frame.reindex(columns=["A", "B"]).astype("float16") + _check_cast(casted, "float16") + + def test_astype_mixed_type(self): + # mixed casting + df = DataFrame( + { + "a": 1.0, + "b": 2, + "c": "foo", + "float32": np.array([1.0] * 10, dtype="float32"), + "int32": np.array([1] * 10, dtype="int32"), + }, + index=np.arange(10), + ) + mn = df._get_numeric_data().copy() + mn["little_float"] = np.array(12345.0, dtype="float16") + mn["big_float"] = np.array(123456789101112.0, dtype="float64") + + casted = mn.astype("float64") + _check_cast(casted, "float64") + + casted = mn.astype("int64") + _check_cast(casted, "int64") + + casted = mn.reindex(columns=["little_float"]).astype("float16") + _check_cast(casted, "float16") + + casted = mn.astype("float32") + _check_cast(casted, "float32") + + casted = mn.astype("int32") + _check_cast(casted, "int32") + + # to object + casted = mn.astype("O") + _check_cast(casted, "object") + + def test_astype_with_exclude_string(self, float_frame): + df = float_frame.copy() + expected = float_frame.astype(int) + df["string"] = "foo" + casted = df.astype(int, errors="ignore") + + expected["string"] = "foo" + tm.assert_frame_equal(casted, expected) + + df = float_frame.copy() + expected = float_frame.astype(np.int32) + df["string"] = "foo" + casted = df.astype(np.int32, errors="ignore") + + expected["string"] = "foo" + tm.assert_frame_equal(casted, expected) + + def test_astype_with_view_float(self, float_frame): + # this is the only real reason to do it this way + tf = np.round(float_frame).astype(np.int32) + tf.astype(np.float32, copy=False) + + # TODO(wesm): verification? + tf = float_frame.astype(np.float64) + tf.astype(np.int64, copy=False) + + def test_astype_with_view_mixed_float(self, mixed_float_frame): + tf = mixed_float_frame.reindex(columns=["A", "B", "C"]) + + tf.astype(np.int64) + tf.astype(np.float32) + + @pytest.mark.parametrize("dtype", [np.int32, np.int64]) + @pytest.mark.parametrize("val", [np.nan, np.inf]) + def test_astype_cast_nan_inf_int(self, val, dtype): + # see GH#14265 + # + # Check NaN and inf --> raise error when converting to int. + msg = "Cannot convert non-finite values \\(NA or inf\\) to integer" + df = DataFrame([val]) + + with pytest.raises(ValueError, match=msg): + df.astype(dtype) + + def test_astype_str(self): + # see GH#9757 + a = Series(date_range("2010-01-04", periods=5)) + b = Series(date_range("3/6/2012 00:00", periods=5, tz="US/Eastern")) + c = Series([Timedelta(x, unit="d") for x in range(5)]) + d = Series(range(5)) + e = Series([0.0, 0.2, 0.4, 0.6, 0.8]) + + df = DataFrame({"a": a, "b": b, "c": c, "d": d, "e": e}) + + # Datetime-like + result = df.astype(str) + + expected = DataFrame( + { + "a": list(map(str, (Timestamp(x)._date_repr for x in a._values))), + "b": list(map(str, map(Timestamp, b._values))), + "c": [Timedelta(x)._repr_base() for x in c._values], + "d": list(map(str, d._values)), + "e": list(map(str, e._values)), + }, + dtype="str", + ) + + tm.assert_frame_equal(result, expected) + + def test_astype_str_float(self, using_infer_string): + # see GH#11302 + result = DataFrame([np.nan]).astype(str) + expected = DataFrame([np.nan if using_infer_string else "nan"], dtype="str") + + tm.assert_frame_equal(result, expected) + result = DataFrame([1.12345678901234567890]).astype(str) + + val = "1.1234567890123457" + expected = DataFrame([val], dtype="str") + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("dtype_class", [dict, Series]) + def test_astype_dict_like(self, dtype_class): + # GH7271 & GH16717 + a = Series(date_range("2010-01-04", periods=5)) + b = Series(range(5)) + c = Series([0.0, 0.2, 0.4, 0.6, 0.8]) + d = Series(["1.0", "2", "3.14", "4", "5.4"]) + df = DataFrame({"a": a, "b": b, "c": c, "d": d}) + original = df.copy(deep=True) + + # change type of a subset of columns + dt1 = dtype_class({"b": "str", "d": "float32"}) + result = df.astype(dt1) + expected = DataFrame( + { + "a": a, + "b": Series(["0", "1", "2", "3", "4"], dtype="str"), + "c": c, + "d": Series([1.0, 2.0, 3.14, 4.0, 5.4], dtype="float32"), + } + ) + tm.assert_frame_equal(result, expected) + tm.assert_frame_equal(df, original) + + dt2 = dtype_class({"b": np.float32, "c": "float32", "d": np.float64}) + result = df.astype(dt2) + expected = DataFrame( + { + "a": a, + "b": Series([0.0, 1.0, 2.0, 3.0, 4.0], dtype="float32"), + "c": Series([0.0, 0.2, 0.4, 0.6, 0.8], dtype="float32"), + "d": Series([1.0, 2.0, 3.14, 4.0, 5.4], dtype="float64"), + } + ) + tm.assert_frame_equal(result, expected) + tm.assert_frame_equal(df, original) + + # change all columns + dt3 = dtype_class({"a": str, "b": str, "c": str, "d": str}) + tm.assert_frame_equal(df.astype(dt3), df.astype(str)) + tm.assert_frame_equal(df, original) + + # error should be raised when using something other than column labels + # in the keys of the dtype dict + dt4 = dtype_class({"b": str, 2: str}) + dt5 = dtype_class({"e": str}) + msg_frame = ( + "Only a column name can be used for the key in a dtype mappings argument. " + "'{}' not found in columns." + ) + with pytest.raises(KeyError, match=msg_frame.format(2)): + df.astype(dt4) + with pytest.raises(KeyError, match=msg_frame.format("e")): + df.astype(dt5) + tm.assert_frame_equal(df, original) + + # if the dtypes provided are the same as the original dtypes, the + # resulting DataFrame should be the same as the original DataFrame + dt6 = dtype_class({col: df[col].dtype for col in df.columns}) + equiv = df.astype(dt6) + tm.assert_frame_equal(df, equiv) + tm.assert_frame_equal(df, original) + + # GH#16717 + # if dtypes provided is empty, the resulting DataFrame + # should be the same as the original DataFrame + dt7 = dtype_class({}) if dtype_class is dict else dtype_class({}, dtype=object) + equiv = df.astype(dt7) + tm.assert_frame_equal(df, equiv) + tm.assert_frame_equal(df, original) + + def test_astype_duplicate_col(self): + a1 = Series([1, 2, 3, 4, 5], name="a") + b = Series([0.1, 0.2, 0.4, 0.6, 0.8], name="b") + a2 = Series([0, 1, 2, 3, 4], name="a") + df = concat([a1, b, a2], axis=1) + + result = df.astype("str") + a1_str = Series(["1", "2", "3", "4", "5"], dtype="str", name="a") + b_str = Series(["0.1", "0.2", "0.4", "0.6", "0.8"], dtype="str", name="b") + a2_str = Series(["0", "1", "2", "3", "4"], dtype="str", name="a") + expected = concat([a1_str, b_str, a2_str], axis=1) + tm.assert_frame_equal(result, expected) + + result = df.astype({"a": "str"}) + expected = concat([a1_str, b, a2_str], axis=1) + tm.assert_frame_equal(result, expected) + + def test_astype_duplicate_col_series_arg(self): + # GH#44417 + vals = np.random.default_rng(2).standard_normal((3, 4)) + df = DataFrame(vals, columns=["A", "B", "C", "A"]) + dtypes = df.dtypes + dtypes.iloc[0] = str + dtypes.iloc[2] = "Float64" + + result = df.astype(dtypes) + expected = DataFrame( + { + 0: Series(vals[:, 0].astype(str), dtype="str"), + 1: vals[:, 1], + 2: pd.array(vals[:, 2], dtype="Float64"), + 3: vals[:, 3], + } + ) + expected.columns = df.columns + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "dtype", + [ + "category", + CategoricalDtype(), + CategoricalDtype(ordered=True), + CategoricalDtype(ordered=False), + CategoricalDtype(categories=list("abcdef")), + CategoricalDtype(categories=list("edba"), ordered=False), + CategoricalDtype(categories=list("edcb"), ordered=True), + ], + ids=repr, + ) + def test_astype_categorical(self, dtype): + # GH#18099 + d = {"A": list("abbc"), "B": list("bccd"), "C": list("cdde")} + df = DataFrame(d) + result = df.astype(dtype) + expected = DataFrame({k: Categorical(v, dtype=dtype) for k, v in d.items()}) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("cls", [CategoricalDtype, DatetimeTZDtype, IntervalDtype]) + def test_astype_categoricaldtype_class_raises(self, cls): + df = DataFrame({"A": ["a", "a", "b", "c"]}) + xpr = f"Expected an instance of {cls.__name__}" + with pytest.raises(TypeError, match=xpr): + df.astype({"A": cls}) + + with pytest.raises(TypeError, match=xpr): + df["A"].astype(cls) + + @pytest.mark.parametrize("dtype", ["Int64", "Int32", "Int16"]) + def test_astype_extension_dtypes(self, dtype): + # GH#22578 + df = DataFrame([[1.0, 2.0], [3.0, 4.0], [5.0, 6.0]], columns=["a", "b"]) + + expected1 = DataFrame( + { + "a": pd.array([1, 3, 5], dtype=dtype), + "b": pd.array([2, 4, 6], dtype=dtype), + } + ) + tm.assert_frame_equal(df.astype(dtype), expected1) + tm.assert_frame_equal(df.astype("int64").astype(dtype), expected1) + tm.assert_frame_equal(df.astype(dtype).astype("float64"), df) + + df = DataFrame([[1.0, 2.0], [3.0, 4.0], [5.0, 6.0]], columns=["a", "b"]) + df["b"] = df["b"].astype(dtype) + expected2 = DataFrame( + {"a": [1.0, 3.0, 5.0], "b": pd.array([2, 4, 6], dtype=dtype)} + ) + tm.assert_frame_equal(df, expected2) + + tm.assert_frame_equal(df.astype(dtype), expected1) + tm.assert_frame_equal(df.astype("int64").astype(dtype), expected1) + + @pytest.mark.parametrize("dtype", ["Int64", "Int32", "Int16"]) + def test_astype_extension_dtypes_1d(self, dtype): + # GH#22578 + df = DataFrame({"a": [1.0, 2.0, 3.0]}) + + expected1 = DataFrame({"a": pd.array([1, 2, 3], dtype=dtype)}) + tm.assert_frame_equal(df.astype(dtype), expected1) + tm.assert_frame_equal(df.astype("int64").astype(dtype), expected1) + + df = DataFrame({"a": [1.0, 2.0, 3.0]}) + df["a"] = df["a"].astype(dtype) + expected2 = DataFrame({"a": pd.array([1, 2, 3], dtype=dtype)}) + tm.assert_frame_equal(df, expected2) + + tm.assert_frame_equal(df.astype(dtype), expected1) + tm.assert_frame_equal(df.astype("int64").astype(dtype), expected1) + + @pytest.mark.parametrize("dtype", ["category", "Int64"]) + def test_astype_extension_dtypes_duplicate_col(self, dtype): + # GH#24704 + a1 = Series([0, np.nan, 4], name="a") + a2 = Series([np.nan, 3, 5], name="a") + df = concat([a1, a2], axis=1) + + result = df.astype(dtype) + expected = concat([a1.astype(dtype), a2.astype(dtype)], axis=1) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "dtype", [{100: "float64", 200: "uint64"}, "category", "float64"] + ) + def test_astype_column_metadata(self, dtype): + # GH#19920 + columns = Index([100, 200, 300], dtype=np.uint64, name="foo") + df = DataFrame(np.arange(15).reshape(5, 3), columns=columns) + df = df.astype(dtype) + tm.assert_index_equal(df.columns, columns) + + @pytest.mark.parametrize("unit", ["Y", "M", "W", "D", "h", "m"]) + def test_astype_from_object_to_datetime_unit(self, unit): + vals = [ + ["2015-01-01", "2015-01-02", "2015-01-03"], + ["2017-01-01", "2017-01-02", "2017-02-03"], + ] + df = DataFrame(vals, dtype=object) + msg = ( + rf"Unexpected value for 'dtype': 'datetime64\[{unit}\]'. " + r"Must be 'datetime64\[s\]', 'datetime64\[ms\]', 'datetime64\[us\]', " + r"'datetime64\[ns\]' or DatetimeTZDtype" + ) + with pytest.raises(ValueError, match=msg): + df.astype(f"M8[{unit}]") + + @pytest.mark.parametrize("unit", ["Y", "M", "W", "D", "h", "m"]) + def test_astype_from_object_to_timedelta_unit(self, unit): + vals = [ + ["1 Day", "2 Days", "3 Days"], + ["4 Days", "5 Days", "6 Days"], + ] + df = DataFrame(vals, dtype=object) + msg = ( + r"Cannot convert from timedelta64\[ns\] to timedelta64\[.*\]. " + "Supported resolutions are 's', 'ms', 'us', 'ns'" + ) + with pytest.raises(ValueError, match=msg): + # TODO: this is ValueError while for DatetimeArray it is TypeError; + # get these consistent + df.astype(f"m8[{unit}]") + + @pytest.mark.parametrize("dtype", ["M8", "m8"]) + @pytest.mark.parametrize("unit", ["ns", "us", "ms", "s", "h", "m", "D"]) + def test_astype_from_datetimelike_to_object(self, dtype, unit): + # tests astype to object dtype + # GH#19223 / GH#12425 + dtype = f"{dtype}[{unit}]" + arr = np.array([[1, 2, 3]], dtype=dtype) + df = DataFrame(arr) + result = df.astype(object) + assert (result.dtypes == object).all() + + if dtype.startswith("M8"): + assert result.iloc[0, 0] == Timestamp(1, unit=unit) + else: + assert result.iloc[0, 0] == Timedelta(1, unit=unit) + + @pytest.mark.parametrize("arr_dtype", [np.int64, np.float64]) + @pytest.mark.parametrize("dtype", ["M8", "m8"]) + @pytest.mark.parametrize("unit", ["ns", "us", "ms", "s", "h", "m", "D"]) + def test_astype_to_datetimelike_unit(self, arr_dtype, dtype, unit): + # tests all units from numeric origination + # GH#19223 / GH#12425 + dtype = f"{dtype}[{unit}]" + arr = np.array([[1, 2, 3]], dtype=arr_dtype) + df = DataFrame(arr) + result = df.astype(dtype) + expected = DataFrame(arr.astype(dtype)) + + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("unit", ["ns", "us", "ms", "s", "h", "m", "D"]) + def test_astype_to_datetime_unit(self, unit): + # tests all units from datetime origination + # GH#19223 + dtype = f"M8[{unit}]" + arr = np.array([[1, 2, 3]], dtype=dtype) + df = DataFrame(arr) + ser = df.iloc[:, 0] + idx = Index(ser) + dta = ser._values + + if unit in ["ns", "us", "ms", "s"]: + # GH#48928 + result = df.astype(dtype) + else: + # we use the nearest supported dtype (i.e. M8[s]) + msg = rf"Cannot cast DatetimeArray to dtype datetime64\[{unit}\]" + with pytest.raises(TypeError, match=msg): + df.astype(dtype) + + with pytest.raises(TypeError, match=msg): + ser.astype(dtype) + + with pytest.raises(TypeError, match=msg.replace("Array", "Index")): + idx.astype(dtype) + + with pytest.raises(TypeError, match=msg): + dta.astype(dtype) + + return + + exp_df = DataFrame(arr.astype(dtype)) + assert (exp_df.dtypes == dtype).all() + tm.assert_frame_equal(result, exp_df) + + res_ser = ser.astype(dtype) + exp_ser = exp_df.iloc[:, 0] + assert exp_ser.dtype == dtype + tm.assert_series_equal(res_ser, exp_ser) + + exp_dta = exp_ser._values + + res_index = idx.astype(dtype) + exp_index = Index(exp_ser) + assert exp_index.dtype == dtype + tm.assert_index_equal(res_index, exp_index) + + res_dta = dta.astype(dtype) + assert exp_dta.dtype == dtype + tm.assert_extension_array_equal(res_dta, exp_dta) + + @pytest.mark.parametrize("unit", ["ns"]) + def test_astype_to_timedelta_unit_ns(self, unit): + # preserver the timedelta conversion + # GH#19223 + dtype = f"m8[{unit}]" + arr = np.array([[1, 2, 3]], dtype=dtype) + df = DataFrame(arr) + result = df.astype(dtype) + expected = DataFrame(arr.astype(dtype)) + + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("unit", ["us", "ms", "s", "h", "m", "D"]) + def test_astype_to_timedelta_unit(self, unit): + # coerce to float + # GH#19223 until 2.0 used to coerce to float + dtype = f"m8[{unit}]" + arr = np.array([[1, 2, 3]], dtype=dtype) + df = DataFrame(arr) + ser = df.iloc[:, 0] + tdi = Index(ser) + tda = tdi._values + + if unit in ["us", "ms", "s"]: + assert (df.dtypes == dtype).all() + result = df.astype(dtype) + else: + # We get the nearest supported unit, i.e. "s" + assert (df.dtypes == "m8[s]").all() + + msg = ( + rf"Cannot convert from timedelta64\[s\] to timedelta64\[{unit}\]. " + "Supported resolutions are 's', 'ms', 'us', 'ns'" + ) + with pytest.raises(ValueError, match=msg): + df.astype(dtype) + with pytest.raises(ValueError, match=msg): + ser.astype(dtype) + with pytest.raises(ValueError, match=msg): + tdi.astype(dtype) + with pytest.raises(ValueError, match=msg): + tda.astype(dtype) + + return + + result = df.astype(dtype) + # The conversion is a no-op, so we just get a copy + expected = df + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("unit", ["ns", "us", "ms", "s", "h", "m", "D"]) + def test_astype_to_incorrect_datetimelike(self, unit): + # trying to astype a m to a M, or vice-versa + # GH#19224 + dtype = f"M8[{unit}]" + other = f"m8[{unit}]" + + df = DataFrame(np.array([[1, 2, 3]], dtype=dtype)) + msg = "|".join( + [ + # BlockManager path + rf"Cannot cast DatetimeArray to dtype timedelta64\[{unit}\]", + # ArrayManager path + "cannot astype a datetimelike from " + rf"\[datetime64\[ns\]\] to \[timedelta64\[{unit}\]\]", + ] + ) + with pytest.raises(TypeError, match=msg): + df.astype(other) + + msg = "|".join( + [ + # BlockManager path + rf"Cannot cast TimedeltaArray to dtype datetime64\[{unit}\]", + # ArrayManager path + "cannot astype a timedelta from " + rf"\[timedelta64\[ns\]\] to \[datetime64\[{unit}\]\]", + ] + ) + df = DataFrame(np.array([[1, 2, 3]], dtype=other)) + with pytest.raises(TypeError, match=msg): + df.astype(dtype) + + def test_astype_arg_for_errors(self): + # GH#14878 + + df = DataFrame([1, 2, 3]) + + msg = ( + "Expected value of kwarg 'errors' to be one of " + "['raise', 'ignore']. Supplied value is 'True'" + ) + with pytest.raises(ValueError, match=re.escape(msg)): + df.astype(np.float64, errors=True) + + df.astype(np.int8, errors="ignore") + + def test_astype_invalid_conversion(self): + # GH#47571 + df = DataFrame({"a": [1, 2, "text"], "b": [1, 2, 3]}) + + msg = ( + "invalid literal for int() with base 10: 'text': " + "Error while type casting for column 'a'" + ) + + with pytest.raises(ValueError, match=re.escape(msg)): + df.astype({"a": int}) + + def test_astype_arg_for_errors_dictlist(self): + # GH#25905 + df = DataFrame( + [ + {"a": "1", "b": "16.5%", "c": "test"}, + {"a": "2.2", "b": "15.3", "c": "another_test"}, + ] + ) + expected = DataFrame( + [ + {"a": 1.0, "b": "16.5%", "c": "test"}, + {"a": 2.2, "b": "15.3", "c": "another_test"}, + ] + ) + expected["c"] = expected["c"].astype("object") + type_dict = {"a": "float64", "b": "float64", "c": "object"} + + result = df.astype(dtype=type_dict, errors="ignore") + + tm.assert_frame_equal(result, expected) + + def test_astype_dt64tz(self, timezone_frame): + # astype + expected = np.array( + [ + [ + Timestamp("2013-01-01 00:00:00"), + Timestamp("2013-01-02 00:00:00"), + Timestamp("2013-01-03 00:00:00"), + ], + [ + Timestamp("2013-01-01 00:00:00-0500", tz="US/Eastern"), + NaT, + Timestamp("2013-01-03 00:00:00-0500", tz="US/Eastern"), + ], + [ + Timestamp("2013-01-01 00:00:00+0100", tz="CET"), + NaT, + Timestamp("2013-01-03 00:00:00+0100", tz="CET"), + ], + ], + dtype=object, + ).T + expected = DataFrame( + expected, + index=timezone_frame.index, + columns=timezone_frame.columns, + dtype=object, + ) + result = timezone_frame.astype(object) + tm.assert_frame_equal(result, expected) + + msg = "Cannot use .astype to convert from timezone-aware dtype to timezone-" + with pytest.raises(TypeError, match=msg): + # dt64tz->dt64 deprecated + timezone_frame.astype("datetime64[ns]") + + def test_astype_dt64tz_to_str(self, timezone_frame, using_infer_string): + # str formatting + result = timezone_frame.astype(str) + na_value = np.nan if using_infer_string else "NaT" + expected = DataFrame( + [ + [ + "2013-01-01", + "2013-01-01 00:00:00-05:00", + "2013-01-01 00:00:00+01:00", + ], + ["2013-01-02", na_value, na_value], + [ + "2013-01-03", + "2013-01-03 00:00:00-05:00", + "2013-01-03 00:00:00+01:00", + ], + ], + columns=timezone_frame.columns, + dtype="str", + ) + tm.assert_frame_equal(result, expected) + + with option_context("display.max_columns", 20): + result = str(timezone_frame) + assert ( + "0 2013-01-01 2013-01-01 00:00:00-05:00 2013-01-01 00:00:00+01:00" + ) in result + assert ( + "1 2013-01-02 NaT NaT" + ) in result + assert ( + "2 2013-01-03 2013-01-03 00:00:00-05:00 2013-01-03 00:00:00+01:00" + ) in result + + def test_astype_empty_dtype_dict(self): + # issue mentioned further down in the following issue's thread + # https://github.com/pandas-dev/pandas/issues/33113 + df = DataFrame() + result = df.astype({}) + tm.assert_frame_equal(result, df) + assert result is not df + + @pytest.mark.parametrize( + "data, dtype", + [ + (["x", "y", "z"], "string[python]"), + pytest.param( + ["x", "y", "z"], + "string[pyarrow]", + marks=td.skip_if_no("pyarrow"), + ), + (["x", "y", "z"], "category"), + (3 * [Timestamp("2020-01-01", tz="UTC")], None), + (3 * [Interval(0, 1)], None), + ], + ) + @pytest.mark.parametrize("errors", ["raise", "ignore"]) + def test_astype_ignores_errors_for_extension_dtypes(self, data, dtype, errors): + # https://github.com/pandas-dev/pandas/issues/35471 + df = DataFrame(Series(data, dtype=dtype)) + if errors == "ignore": + expected = df + result = df.astype(float, errors=errors) + tm.assert_frame_equal(result, expected) + else: + msg = "(Cannot cast)|(could not convert)" + with pytest.raises((ValueError, TypeError), match=msg): + df.astype(float, errors=errors) + + def test_astype_tz_conversion(self): + # GH 35973 + val = {"tz": date_range("2020-08-30", freq="d", periods=2, tz="Europe/London")} + df = DataFrame(val) + result = df.astype({"tz": "datetime64[ns, Europe/Berlin]"}) + + expected = df + expected["tz"] = expected["tz"].dt.tz_convert("Europe/Berlin") + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("tz", ["UTC", "Europe/Berlin"]) + def test_astype_tz_object_conversion(self, tz): + # GH 35973 + val = {"tz": date_range("2020-08-30", freq="d", periods=2, tz="Europe/London")} + expected = DataFrame(val) + + # convert expected to object dtype from other tz str (independently tested) + result = expected.astype({"tz": f"datetime64[ns, {tz}]"}) + result = result.astype({"tz": "object"}) + + # do real test: object dtype to a specified tz, different from construction tz. + result = result.astype({"tz": "datetime64[ns, Europe/London]"}) + tm.assert_frame_equal(result, expected) + + @pytest.mark.xfail(using_string_dtype(), reason="TODO(infer_string) GH#60639") + def test_astype_dt64_to_string( + self, frame_or_series, tz_naive_fixture, using_infer_string + ): + # GH#41409 + tz = tz_naive_fixture + + dti = date_range("2016-01-01", periods=3, tz=tz) + dta = dti._data + dta[0] = NaT + + obj = frame_or_series(dta) + result = obj.astype("string") + + # Check that Series/DataFrame.astype matches DatetimeArray.astype + expected = frame_or_series(dta.astype("string")) + tm.assert_equal(result, expected) + + item = result.iloc[0] + if frame_or_series is DataFrame: + item = item.iloc[0] + if using_infer_string: + assert item is np.nan + else: + assert item is pd.NA + + # For non-NA values, we should match what we get for non-EA str + alt = obj.astype(str) + assert np.all(alt.iloc[1:] == result.iloc[1:]) + + def test_astype_td64_to_string(self, frame_or_series): + # GH#41409 + tdi = pd.timedelta_range("1 Day", periods=3) + obj = frame_or_series(tdi) + + expected = frame_or_series(["1 days", "2 days", "3 days"], dtype="string") + result = obj.astype("string") + tm.assert_equal(result, expected) + + def test_astype_bytes(self): + # GH#39474 + result = DataFrame(["foo", "bar", "baz"]).astype(bytes) + assert result.dtypes[0] == np.dtype("S3") + + @pytest.mark.parametrize( + "index_slice", + [ + np.s_[:2, :2], + np.s_[:1, :2], + np.s_[:2, :1], + np.s_[::2, ::2], + np.s_[::1, ::2], + np.s_[::2, ::1], + ], + ) + def test_astype_noncontiguous(self, index_slice): + # GH#42396 + data = np.arange(16).reshape(4, 4) + df = DataFrame(data) + + result = df.iloc[index_slice].astype("int16") + expected = df.iloc[index_slice] + tm.assert_frame_equal(result, expected, check_dtype=False) + + def test_astype_retain_attrs(self, any_numpy_dtype): + # GH#44414 + df = DataFrame({"a": [0, 1, 2], "b": [3, 4, 5]}) + df.attrs["Location"] = "Michigan" + + result = df.astype({"a": any_numpy_dtype}).attrs + expected = df.attrs + + tm.assert_dict_equal(expected, result) + + +class TestAstypeCategorical: + def test_astype_from_categorical3(self): + df = DataFrame({"cats": [1, 2, 3, 4, 5, 6], "vals": [1, 2, 3, 4, 5, 6]}) + cats = Categorical([1, 2, 3, 4, 5, 6]) + exp_df = DataFrame({"cats": cats, "vals": [1, 2, 3, 4, 5, 6]}) + df["cats"] = df["cats"].astype("category") + tm.assert_frame_equal(exp_df, df) + + def test_astype_from_categorical4(self): + df = DataFrame( + {"cats": ["a", "b", "b", "a", "a", "d"], "vals": [1, 2, 3, 4, 5, 6]} + ) + cats = Categorical(["a", "b", "b", "a", "a", "d"]) + exp_df = DataFrame({"cats": cats, "vals": [1, 2, 3, 4, 5, 6]}) + df["cats"] = df["cats"].astype("category") + tm.assert_frame_equal(exp_df, df) + + def test_categorical_astype_to_int(self, any_int_dtype): + # GH#39402 + + df = DataFrame(data={"col1": pd.array([2.0, 1.0, 3.0])}) + df.col1 = df.col1.astype("category") + df.col1 = df.col1.astype(any_int_dtype) + expected = DataFrame({"col1": pd.array([2, 1, 3], dtype=any_int_dtype)}) + tm.assert_frame_equal(df, expected) + + def test_astype_categorical_to_string_missing(self): + # https://github.com/pandas-dev/pandas/issues/41797 + df = DataFrame(["a", "b", np.nan]) + expected = df.astype(str) + cat = df.astype("category") + result = cat.astype(str) + tm.assert_frame_equal(result, expected) + + +class IntegerArrayNoCopy(pd.core.arrays.IntegerArray): + # GH 42501 + + def copy(self): + assert False + + +class Int16DtypeNoCopy(pd.Int16Dtype): + # GH 42501 + + @classmethod + def construct_array_type(cls): + return IntegerArrayNoCopy + + +def test_frame_astype_no_copy(): + # GH 42501 + df = DataFrame({"a": [1, 4, None, 5], "b": [6, 7, 8, 9]}, dtype=object) + result = df.astype({"a": Int16DtypeNoCopy()}, copy=False) + + assert result.a.dtype == pd.Int16Dtype() + assert np.shares_memory(df.b.values, result.b.values) + + +@pytest.mark.parametrize("dtype", ["int64", "Int64"]) +def test_astype_copies(dtype): + # GH#50984 + pytest.importorskip("pyarrow") + df = DataFrame({"a": [1, 2, 3]}, dtype=dtype) + result = df.astype("int64[pyarrow]", copy=True) + df.iloc[0, 0] = 100 + expected = DataFrame({"a": [1, 2, 3]}, dtype="int64[pyarrow]") + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("val", [None, 1, 1.5, np.nan, NaT]) +def test_astype_to_string_not_modifying_input(string_storage, val): + # GH#51073 + df = DataFrame({"a": ["a", "b", val]}) + expected = df.copy() + with option_context("mode.string_storage", string_storage): + df.astype("string", copy=False) + tm.assert_frame_equal(df, expected) + + +@pytest.mark.parametrize("val", [None, 1, 1.5, np.nan, NaT]) +def test_astype_to_string_dtype_not_modifying_input(any_string_dtype, val): + # GH#51073 - variant of the above test with explicit dtype instances + df = DataFrame({"a": ["a", "b", val]}) + expected = df.copy() + df.astype(any_string_dtype) + tm.assert_frame_equal(df, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_at_time.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_at_time.py new file mode 100644 index 0000000000000000000000000000000000000000..4c1434bd66aff127e07c4ff3fce90a22721b2035 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_at_time.py @@ -0,0 +1,132 @@ +from datetime import time + +import numpy as np +import pytest +import pytz + +from pandas._libs.tslibs import timezones + +from pandas import ( + DataFrame, + date_range, +) +import pandas._testing as tm + + +class TestAtTime: + @pytest.mark.parametrize("tzstr", ["US/Eastern", "dateutil/US/Eastern"]) + def test_localized_at_time(self, tzstr, frame_or_series): + tz = timezones.maybe_get_tz(tzstr) + + rng = date_range("4/16/2012", "5/1/2012", freq="h") + ts = frame_or_series( + np.random.default_rng(2).standard_normal(len(rng)), index=rng + ) + + ts_local = ts.tz_localize(tzstr) + + result = ts_local.at_time(time(10, 0)) + expected = ts.at_time(time(10, 0)).tz_localize(tzstr) + tm.assert_equal(result, expected) + assert timezones.tz_compare(result.index.tz, tz) + + def test_at_time(self, frame_or_series): + rng = date_range("1/1/2000", "1/5/2000", freq="5min") + ts = DataFrame( + np.random.default_rng(2).standard_normal((len(rng), 2)), index=rng + ) + ts = tm.get_obj(ts, frame_or_series) + rs = ts.at_time(rng[1]) + assert (rs.index.hour == rng[1].hour).all() + assert (rs.index.minute == rng[1].minute).all() + assert (rs.index.second == rng[1].second).all() + + result = ts.at_time("9:30") + expected = ts.at_time(time(9, 30)) + tm.assert_equal(result, expected) + + def test_at_time_midnight(self, frame_or_series): + # midnight, everything + rng = date_range("1/1/2000", "1/31/2000") + ts = DataFrame( + np.random.default_rng(2).standard_normal((len(rng), 3)), index=rng + ) + ts = tm.get_obj(ts, frame_or_series) + + result = ts.at_time(time(0, 0)) + tm.assert_equal(result, ts) + + def test_at_time_nonexistent(self, frame_or_series): + # time doesn't exist + rng = date_range("1/1/2012", freq="23Min", periods=384) + ts = DataFrame(np.random.default_rng(2).standard_normal(len(rng)), rng) + ts = tm.get_obj(ts, frame_or_series) + rs = ts.at_time("16:00") + assert len(rs) == 0 + + @pytest.mark.parametrize( + "hour", ["1:00", "1:00AM", time(1), time(1, tzinfo=pytz.UTC)] + ) + def test_at_time_errors(self, hour): + # GH#24043 + dti = date_range("2018", periods=3, freq="h") + df = DataFrame(list(range(len(dti))), index=dti) + if getattr(hour, "tzinfo", None) is None: + result = df.at_time(hour) + expected = df.iloc[1:2] + tm.assert_frame_equal(result, expected) + else: + with pytest.raises(ValueError, match="Index must be timezone"): + df.at_time(hour) + + def test_at_time_tz(self): + # GH#24043 + dti = date_range("2018", periods=3, freq="h", tz="US/Pacific") + df = DataFrame(list(range(len(dti))), index=dti) + result = df.at_time(time(4, tzinfo=pytz.timezone("US/Eastern"))) + expected = df.iloc[1:2] + tm.assert_frame_equal(result, expected) + + def test_at_time_raises(self, frame_or_series): + # GH#20725 + obj = DataFrame([[1, 2, 3], [4, 5, 6]]) + obj = tm.get_obj(obj, frame_or_series) + msg = "Index must be DatetimeIndex" + with pytest.raises(TypeError, match=msg): # index is not a DatetimeIndex + obj.at_time("00:00") + + @pytest.mark.parametrize("axis", ["index", "columns", 0, 1]) + def test_at_time_axis(self, axis): + # issue 8839 + rng = date_range("1/1/2000", "1/5/2000", freq="5min") + ts = DataFrame(np.random.default_rng(2).standard_normal((len(rng), len(rng)))) + ts.index, ts.columns = rng, rng + + indices = rng[(rng.hour == 9) & (rng.minute == 30) & (rng.second == 0)] + + if axis in ["index", 0]: + expected = ts.loc[indices, :] + elif axis in ["columns", 1]: + expected = ts.loc[:, indices] + + result = ts.at_time("9:30", axis=axis) + + # Without clearing freq, result has freq 1440T and expected 5T + result.index = result.index._with_freq(None) + expected.index = expected.index._with_freq(None) + tm.assert_frame_equal(result, expected) + + def test_at_time_datetimeindex(self): + index = date_range("2012-01-01", "2012-01-05", freq="30min") + df = DataFrame( + np.random.default_rng(2).standard_normal((len(index), 5)), index=index + ) + akey = time(12, 0, 0) + ainds = [24, 72, 120, 168] + + result = df.at_time(akey) + expected = df.loc[akey] + expected2 = df.iloc[ainds] + tm.assert_frame_equal(result, expected) + tm.assert_frame_equal(result, expected2) + assert len(result) == 4 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_between_time.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_between_time.py new file mode 100644 index 0000000000000000000000000000000000000000..74d6291707e19d2b6536f4a5b758302ce3aa8e2b --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_between_time.py @@ -0,0 +1,227 @@ +from datetime import ( + datetime, + time, +) + +import numpy as np +import pytest + +from pandas._libs.tslibs import timezones +import pandas.util._test_decorators as td + +from pandas import ( + DataFrame, + Series, + date_range, +) +import pandas._testing as tm + + +class TestBetweenTime: + @td.skip_if_not_us_locale + def test_between_time_formats(self, frame_or_series): + # GH#11818 + rng = date_range("1/1/2000", "1/5/2000", freq="5min") + ts = DataFrame( + np.random.default_rng(2).standard_normal((len(rng), 2)), index=rng + ) + ts = tm.get_obj(ts, frame_or_series) + + strings = [ + ("2:00", "2:30"), + ("0200", "0230"), + ("2:00am", "2:30am"), + ("0200am", "0230am"), + ("2:00:00", "2:30:00"), + ("020000", "023000"), + ("2:00:00am", "2:30:00am"), + ("020000am", "023000am"), + ] + expected_length = 28 + + for time_string in strings: + assert len(ts.between_time(*time_string)) == expected_length + + @pytest.mark.parametrize("tzstr", ["US/Eastern", "dateutil/US/Eastern"]) + def test_localized_between_time(self, tzstr, frame_or_series): + tz = timezones.maybe_get_tz(tzstr) + + rng = date_range("4/16/2012", "5/1/2012", freq="h") + ts = Series(np.random.default_rng(2).standard_normal(len(rng)), index=rng) + if frame_or_series is DataFrame: + ts = ts.to_frame() + + ts_local = ts.tz_localize(tzstr) + + t1, t2 = time(10, 0), time(11, 0) + result = ts_local.between_time(t1, t2) + expected = ts.between_time(t1, t2).tz_localize(tzstr) + tm.assert_equal(result, expected) + assert timezones.tz_compare(result.index.tz, tz) + + def test_between_time_types(self, frame_or_series): + # GH11818 + rng = date_range("1/1/2000", "1/5/2000", freq="5min") + obj = DataFrame({"A": 0}, index=rng) + obj = tm.get_obj(obj, frame_or_series) + + msg = r"Cannot convert arg \[datetime\.datetime\(2010, 1, 2, 1, 0\)\] to a time" + with pytest.raises(ValueError, match=msg): + obj.between_time(datetime(2010, 1, 2, 1), datetime(2010, 1, 2, 5)) + + def test_between_time(self, inclusive_endpoints_fixture, frame_or_series): + rng = date_range("1/1/2000", "1/5/2000", freq="5min") + ts = DataFrame( + np.random.default_rng(2).standard_normal((len(rng), 2)), index=rng + ) + ts = tm.get_obj(ts, frame_or_series) + + stime = time(0, 0) + etime = time(1, 0) + inclusive = inclusive_endpoints_fixture + + filtered = ts.between_time(stime, etime, inclusive=inclusive) + exp_len = 13 * 4 + 1 + + if inclusive in ["right", "neither"]: + exp_len -= 5 + if inclusive in ["left", "neither"]: + exp_len -= 4 + + assert len(filtered) == exp_len + for rs in filtered.index: + t = rs.time() + if inclusive in ["left", "both"]: + assert t >= stime + else: + assert t > stime + + if inclusive in ["right", "both"]: + assert t <= etime + else: + assert t < etime + + result = ts.between_time("00:00", "01:00") + expected = ts.between_time(stime, etime) + tm.assert_equal(result, expected) + + # across midnight + rng = date_range("1/1/2000", "1/5/2000", freq="5min") + ts = DataFrame( + np.random.default_rng(2).standard_normal((len(rng), 2)), index=rng + ) + ts = tm.get_obj(ts, frame_or_series) + stime = time(22, 0) + etime = time(9, 0) + + filtered = ts.between_time(stime, etime, inclusive=inclusive) + exp_len = (12 * 11 + 1) * 4 + 1 + if inclusive in ["right", "neither"]: + exp_len -= 4 + if inclusive in ["left", "neither"]: + exp_len -= 4 + + assert len(filtered) == exp_len + for rs in filtered.index: + t = rs.time() + if inclusive in ["left", "both"]: + assert (t >= stime) or (t <= etime) + else: + assert (t > stime) or (t <= etime) + + if inclusive in ["right", "both"]: + assert (t <= etime) or (t >= stime) + else: + assert (t < etime) or (t >= stime) + + def test_between_time_raises(self, frame_or_series): + # GH#20725 + obj = DataFrame([[1, 2, 3], [4, 5, 6]]) + obj = tm.get_obj(obj, frame_or_series) + + msg = "Index must be DatetimeIndex" + with pytest.raises(TypeError, match=msg): # index is not a DatetimeIndex + obj.between_time(start_time="00:00", end_time="12:00") + + def test_between_time_axis(self, frame_or_series): + # GH#8839 + rng = date_range("1/1/2000", periods=100, freq="10min") + ts = Series(np.random.default_rng(2).standard_normal(len(rng)), index=rng) + if frame_or_series is DataFrame: + ts = ts.to_frame() + + stime, etime = ("08:00:00", "09:00:00") + expected_length = 7 + + assert len(ts.between_time(stime, etime)) == expected_length + assert len(ts.between_time(stime, etime, axis=0)) == expected_length + msg = f"No axis named {ts.ndim} for object type {type(ts).__name__}" + with pytest.raises(ValueError, match=msg): + ts.between_time(stime, etime, axis=ts.ndim) + + def test_between_time_axis_aliases(self, axis): + # GH#8839 + rng = date_range("1/1/2000", periods=100, freq="10min") + ts = DataFrame(np.random.default_rng(2).standard_normal((len(rng), len(rng)))) + stime, etime = ("08:00:00", "09:00:00") + exp_len = 7 + + if axis in ["index", 0]: + ts.index = rng + assert len(ts.between_time(stime, etime)) == exp_len + assert len(ts.between_time(stime, etime, axis=0)) == exp_len + + if axis in ["columns", 1]: + ts.columns = rng + selected = ts.between_time(stime, etime, axis=1).columns + assert len(selected) == exp_len + + def test_between_time_axis_raises(self, axis): + # issue 8839 + rng = date_range("1/1/2000", periods=100, freq="10min") + mask = np.arange(0, len(rng)) + rand_data = np.random.default_rng(2).standard_normal((len(rng), len(rng))) + ts = DataFrame(rand_data, index=rng, columns=rng) + stime, etime = ("08:00:00", "09:00:00") + + msg = "Index must be DatetimeIndex" + if axis in ["columns", 1]: + ts.index = mask + with pytest.raises(TypeError, match=msg): + ts.between_time(stime, etime) + with pytest.raises(TypeError, match=msg): + ts.between_time(stime, etime, axis=0) + + if axis in ["index", 0]: + ts.columns = mask + with pytest.raises(TypeError, match=msg): + ts.between_time(stime, etime, axis=1) + + def test_between_time_datetimeindex(self): + index = date_range("2012-01-01", "2012-01-05", freq="30min") + df = DataFrame( + np.random.default_rng(2).standard_normal((len(index), 5)), index=index + ) + bkey = slice(time(13, 0, 0), time(14, 0, 0)) + binds = [26, 27, 28, 74, 75, 76, 122, 123, 124, 170, 171, 172] + + result = df.between_time(bkey.start, bkey.stop) + expected = df.loc[bkey] + expected2 = df.iloc[binds] + tm.assert_frame_equal(result, expected) + tm.assert_frame_equal(result, expected2) + assert len(result) == 12 + + def test_between_time_incorrect_arg_inclusive(self): + # GH40245 + rng = date_range("1/1/2000", "1/5/2000", freq="5min") + ts = DataFrame( + np.random.default_rng(2).standard_normal((len(rng), 2)), index=rng + ) + + stime = time(0, 0) + etime = time(1, 0) + inclusive = "bad_string" + msg = "Inclusive has to be either 'both', 'neither', 'left' or 'right'" + with pytest.raises(ValueError, match=msg): + ts.between_time(stime, etime, inclusive=inclusive) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_clip.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_clip.py new file mode 100644 index 0000000000000000000000000000000000000000..f783a388d75179e9b68e373da65218dfffb04b55 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_clip.py @@ -0,0 +1,199 @@ +import numpy as np +import pytest + +from pandas import ( + DataFrame, + Series, +) +import pandas._testing as tm + + +class TestDataFrameClip: + def test_clip(self, float_frame): + median = float_frame.median().median() + original = float_frame.copy() + + double = float_frame.clip(upper=median, lower=median) + assert not (double.values != median).any() + + # Verify that float_frame was not changed inplace + assert (float_frame.values == original.values).all() + + def test_inplace_clip(self, float_frame): + # GH#15388 + median = float_frame.median().median() + frame_copy = float_frame.copy() + + return_value = frame_copy.clip(upper=median, lower=median, inplace=True) + assert return_value is None + assert not (frame_copy.values != median).any() + + def test_dataframe_clip(self): + # GH#2747 + df = DataFrame(np.random.default_rng(2).standard_normal((1000, 2))) + + for lb, ub in [(-1, 1), (1, -1)]: + clipped_df = df.clip(lb, ub) + + lb, ub = min(lb, ub), max(ub, lb) + lb_mask = df.values <= lb + ub_mask = df.values >= ub + mask = ~lb_mask & ~ub_mask + assert (clipped_df.values[lb_mask] == lb).all() + assert (clipped_df.values[ub_mask] == ub).all() + assert (clipped_df.values[mask] == df.values[mask]).all() + + def test_clip_mixed_numeric(self): + # clip on mixed integer or floats + # GH#24162, clipping now preserves numeric types per column + df = DataFrame({"A": [1, 2, 3], "B": [1.0, np.nan, 3.0]}) + result = df.clip(1, 2) + expected = DataFrame({"A": [1, 2, 2], "B": [1.0, np.nan, 2.0]}) + tm.assert_frame_equal(result, expected) + + df = DataFrame([[1, 2, 3.4], [3, 4, 5.6]], columns=["foo", "bar", "baz"]) + expected = df.dtypes + result = df.clip(upper=3).dtypes + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("inplace", [True, False]) + def test_clip_against_series(self, inplace): + # GH#6966 + + df = DataFrame(np.random.default_rng(2).standard_normal((1000, 2))) + lb = Series(np.random.default_rng(2).standard_normal(1000)) + ub = lb + 1 + + original = df.copy() + clipped_df = df.clip(lb, ub, axis=0, inplace=inplace) + + if inplace: + clipped_df = df + + for i in range(2): + lb_mask = original.iloc[:, i] <= lb + ub_mask = original.iloc[:, i] >= ub + mask = ~lb_mask & ~ub_mask + + result = clipped_df.loc[lb_mask, i] + tm.assert_series_equal(result, lb[lb_mask], check_names=False) + assert result.name == i + + result = clipped_df.loc[ub_mask, i] + tm.assert_series_equal(result, ub[ub_mask], check_names=False) + assert result.name == i + + tm.assert_series_equal(clipped_df.loc[mask, i], df.loc[mask, i]) + + @pytest.mark.parametrize("inplace", [True, False]) + @pytest.mark.parametrize("lower", [[2, 3, 4], np.asarray([2, 3, 4])]) + @pytest.mark.parametrize( + "axis,res", + [ + (0, [[2.0, 2.0, 3.0], [4.0, 5.0, 6.0], [7.0, 7.0, 7.0]]), + (1, [[2.0, 3.0, 4.0], [4.0, 5.0, 6.0], [5.0, 6.0, 7.0]]), + ], + ) + def test_clip_against_list_like(self, inplace, lower, axis, res): + # GH#15390 + arr = np.array([[1.0, 2.0, 3.0], [4.0, 5.0, 6.0], [7.0, 8.0, 9.0]]) + + original = DataFrame( + arr, columns=["one", "two", "three"], index=["a", "b", "c"] + ) + + result = original.clip(lower=lower, upper=[5, 6, 7], axis=axis, inplace=inplace) + + expected = DataFrame(res, columns=original.columns, index=original.index) + if inplace: + result = original + tm.assert_frame_equal(result, expected, check_exact=True) + + @pytest.mark.parametrize("axis", [0, 1, None]) + def test_clip_against_frame(self, axis): + df = DataFrame(np.random.default_rng(2).standard_normal((1000, 2))) + lb = DataFrame(np.random.default_rng(2).standard_normal((1000, 2))) + ub = lb + 1 + + clipped_df = df.clip(lb, ub, axis=axis) + + lb_mask = df <= lb + ub_mask = df >= ub + mask = ~lb_mask & ~ub_mask + + tm.assert_frame_equal(clipped_df[lb_mask], lb[lb_mask]) + tm.assert_frame_equal(clipped_df[ub_mask], ub[ub_mask]) + tm.assert_frame_equal(clipped_df[mask], df[mask]) + + def test_clip_against_unordered_columns(self): + # GH#20911 + df1 = DataFrame( + np.random.default_rng(2).standard_normal((1000, 4)), + columns=["A", "B", "C", "D"], + ) + df2 = DataFrame( + np.random.default_rng(2).standard_normal((1000, 4)), + columns=["D", "A", "B", "C"], + ) + df3 = DataFrame(df2.values - 1, columns=["B", "D", "C", "A"]) + result_upper = df1.clip(lower=0, upper=df2) + expected_upper = df1.clip(lower=0, upper=df2[df1.columns]) + result_lower = df1.clip(lower=df3, upper=3) + expected_lower = df1.clip(lower=df3[df1.columns], upper=3) + result_lower_upper = df1.clip(lower=df3, upper=df2) + expected_lower_upper = df1.clip(lower=df3[df1.columns], upper=df2[df1.columns]) + tm.assert_frame_equal(result_upper, expected_upper) + tm.assert_frame_equal(result_lower, expected_lower) + tm.assert_frame_equal(result_lower_upper, expected_lower_upper) + + def test_clip_with_na_args(self, float_frame): + """Should process np.nan argument as None""" + # GH#17276 + tm.assert_frame_equal(float_frame.clip(np.nan), float_frame) + tm.assert_frame_equal(float_frame.clip(upper=np.nan, lower=np.nan), float_frame) + + # GH#19992 and adjusted in GH#40420 + df = DataFrame({"col_0": [1, 2, 3], "col_1": [4, 5, 6], "col_2": [7, 8, 9]}) + + msg = "Downcasting behavior in Series and DataFrame methods 'where'" + # TODO: avoid this warning here? seems like we should never be upcasting + # in the first place? + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.clip(lower=[4, 5, np.nan], axis=0) + expected = DataFrame( + {"col_0": [4, 5, 3], "col_1": [4, 5, 6], "col_2": [7, 8, 9]} + ) + tm.assert_frame_equal(result, expected) + + result = df.clip(lower=[4, 5, np.nan], axis=1) + expected = DataFrame( + {"col_0": [4, 4, 4], "col_1": [5, 5, 6], "col_2": [7, 8, 9]} + ) + tm.assert_frame_equal(result, expected) + + # GH#40420 + data = {"col_0": [9, -3, 0, -1, 5], "col_1": [-2, -7, 6, 8, -5]} + df = DataFrame(data) + t = Series([2, -4, np.nan, 6, 3]) + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.clip(lower=t, axis=0) + expected = DataFrame({"col_0": [9, -3, 0, 6, 5], "col_1": [2, -4, 6, 8, 3]}) + tm.assert_frame_equal(result, expected) + + def test_clip_int_data_with_float_bound(self): + # GH51472 + df = DataFrame({"a": [1, 2, 3]}) + result = df.clip(lower=1.5) + expected = DataFrame({"a": [1.5, 2.0, 3.0]}) + tm.assert_frame_equal(result, expected) + + def test_clip_with_list_bound(self): + # GH#54817 + df = DataFrame([1, 5]) + expected = DataFrame([3, 5]) + result = df.clip([3]) + tm.assert_frame_equal(result, expected) + + expected = DataFrame([1, 3]) + result = df.clip(upper=[3]) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_combine.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_combine.py new file mode 100644 index 0000000000000000000000000000000000000000..bc6a67e4e1f320dbb71220d33ba03eaf788bcb4b --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_combine.py @@ -0,0 +1,47 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm + + +class TestCombine: + @pytest.mark.parametrize( + "data", + [ + pd.date_range("2000", periods=4), + pd.date_range("2000", periods=4, tz="US/Central"), + pd.period_range("2000", periods=4), + pd.timedelta_range(0, periods=4), + ], + ) + def test_combine_datetlike_udf(self, data): + # GH#23079 + df = pd.DataFrame({"A": data}) + other = df.copy() + df.iloc[1, 0] = None + + def combiner(a, b): + return b + + result = df.combine(other, combiner) + tm.assert_frame_equal(result, other) + + def test_combine_generic(self, float_frame): + df1 = float_frame + df2 = float_frame.loc[float_frame.index[:-5], ["A", "B", "C"]] + + combined = df1.combine(df2, np.add) + combined2 = df2.combine(df1, np.add) + assert combined["D"].isna().all() + assert combined2["D"].isna().all() + + chunk = combined.loc[combined.index[:-5], ["A", "B", "C"]] + chunk2 = combined2.loc[combined2.index[:-5], ["A", "B", "C"]] + + exp = ( + float_frame.loc[float_frame.index[:-5], ["A", "B", "C"]].reindex_like(chunk) + * 2 + ) + tm.assert_frame_equal(chunk, exp) + tm.assert_frame_equal(chunk2, exp) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_combine_first.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_combine_first.py new file mode 100644 index 0000000000000000000000000000000000000000..8aeab5dacd8b4aeb96ef5b91ea0de34c485eab2c --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_combine_first.py @@ -0,0 +1,556 @@ +from datetime import datetime + +import numpy as np +import pytest + +from pandas.core.dtypes.cast import find_common_type +from pandas.core.dtypes.common import is_dtype_equal + +import pandas as pd +from pandas import ( + DataFrame, + Index, + MultiIndex, + Series, +) +import pandas._testing as tm + + +class TestDataFrameCombineFirst: + def test_combine_first_mixed(self): + a = Series(["a", "b"], index=range(2)) + b = Series(range(2), index=range(2)) + f = DataFrame({"A": a, "B": b}) + + a = Series(["a", "b"], index=range(5, 7)) + b = Series(range(2), index=range(5, 7)) + g = DataFrame({"A": a, "B": b}) + + exp = DataFrame({"A": list("abab"), "B": [0, 1, 0, 1]}, index=[0, 1, 5, 6]) + combined = f.combine_first(g) + tm.assert_frame_equal(combined, exp) + + def test_combine_first(self, float_frame, using_infer_string): + # disjoint + head, tail = float_frame[:5], float_frame[5:] + + combined = head.combine_first(tail) + reordered_frame = float_frame.reindex(combined.index) + tm.assert_frame_equal(combined, reordered_frame) + tm.assert_index_equal(combined.columns, float_frame.columns) + tm.assert_series_equal(combined["A"], reordered_frame["A"]) + + # same index + fcopy = float_frame.copy() + fcopy["A"] = 1 + del fcopy["C"] + + fcopy2 = float_frame.copy() + fcopy2["B"] = 0 + del fcopy2["D"] + + combined = fcopy.combine_first(fcopy2) + + assert (combined["A"] == 1).all() + tm.assert_series_equal(combined["B"], fcopy["B"]) + tm.assert_series_equal(combined["C"], fcopy2["C"]) + tm.assert_series_equal(combined["D"], fcopy["D"]) + + # overlap + head, tail = reordered_frame[:10].copy(), reordered_frame + head["A"] = 1 + + combined = head.combine_first(tail) + assert (combined["A"][:10] == 1).all() + + # reverse overlap + tail.iloc[:10, tail.columns.get_loc("A")] = 0 + combined = tail.combine_first(head) + assert (combined["A"][:10] == 0).all() + + # no overlap + f = float_frame[:10] + g = float_frame[10:] + combined = f.combine_first(g) + tm.assert_series_equal(combined["A"].reindex(f.index), f["A"]) + tm.assert_series_equal(combined["A"].reindex(g.index), g["A"]) + + # corner cases + warning = FutureWarning if using_infer_string else None + with tm.assert_produces_warning(warning, match="empty entries"): + comb = float_frame.combine_first(DataFrame()) + tm.assert_frame_equal(comb, float_frame) + + comb = DataFrame().combine_first(float_frame) + tm.assert_frame_equal(comb, float_frame.sort_index()) + + comb = float_frame.combine_first(DataFrame(index=["faz", "boo"])) + assert "faz" in comb.index + + # #2525 + df = DataFrame({"a": [1]}, index=[datetime(2012, 1, 1)]) + df2 = DataFrame(columns=["b"]) + result = df.combine_first(df2) + assert "b" in result + + def test_combine_first_mixed_bug(self): + idx = Index(["a", "b", "c", "e"]) + ser1 = Series([5.0, -9.0, 4.0, 100.0], index=idx) + ser2 = Series(["a", "b", "c", "e"], index=idx) + ser3 = Series([12, 4, 5, 97], index=idx) + + frame1 = DataFrame({"col0": ser1, "col2": ser2, "col3": ser3}) + + idx = Index(["a", "b", "c", "f"]) + ser1 = Series([5.0, -9.0, 4.0, 100.0], index=idx) + ser2 = Series(["a", "b", "c", "f"], index=idx) + ser3 = Series([12, 4, 5, 97], index=idx) + + frame2 = DataFrame({"col1": ser1, "col2": ser2, "col5": ser3}) + + combined = frame1.combine_first(frame2) + assert len(combined.columns) == 5 + + def test_combine_first_same_as_in_update(self): + # gh 3016 (same as in update) + df = DataFrame( + [[1.0, 2.0, False, True], [4.0, 5.0, True, False]], + columns=["A", "B", "bool1", "bool2"], + ) + + other = DataFrame([[45, 45]], index=[0], columns=["A", "B"]) + result = df.combine_first(other) + tm.assert_frame_equal(result, df) + + df.loc[0, "A"] = np.nan + result = df.combine_first(other) + df.loc[0, "A"] = 45 + tm.assert_frame_equal(result, df) + + def test_combine_first_doc_example(self): + # doc example + df1 = DataFrame( + {"A": [1.0, np.nan, 3.0, 5.0, np.nan], "B": [np.nan, 2.0, 3.0, np.nan, 6.0]} + ) + + df2 = DataFrame( + { + "A": [5.0, 2.0, 4.0, np.nan, 3.0, 7.0], + "B": [np.nan, np.nan, 3.0, 4.0, 6.0, 8.0], + } + ) + + result = df1.combine_first(df2) + expected = DataFrame({"A": [1, 2, 3, 5, 3, 7.0], "B": [np.nan, 2, 3, 4, 6, 8]}) + tm.assert_frame_equal(result, expected) + + def test_combine_first_return_obj_type_with_bools(self): + # GH3552 + + df1 = DataFrame( + [[np.nan, 3.0, True], [-4.6, np.nan, True], [np.nan, 7.0, False]] + ) + df2 = DataFrame([[-42.6, np.nan, True], [-5.0, 1.6, False]], index=[1, 2]) + + expected = Series([True, True, False], name=2, dtype=bool) + + result_12 = df1.combine_first(df2)[2] + tm.assert_series_equal(result_12, expected) + + result_21 = df2.combine_first(df1)[2] + tm.assert_series_equal(result_21, expected) + + @pytest.mark.parametrize( + "data1, data2, data_expected", + ( + ( + [datetime(2000, 1, 1), datetime(2000, 1, 2), datetime(2000, 1, 3)], + [pd.NaT, pd.NaT, pd.NaT], + [datetime(2000, 1, 1), datetime(2000, 1, 2), datetime(2000, 1, 3)], + ), + ( + [pd.NaT, pd.NaT, pd.NaT], + [datetime(2000, 1, 1), datetime(2000, 1, 2), datetime(2000, 1, 3)], + [datetime(2000, 1, 1), datetime(2000, 1, 2), datetime(2000, 1, 3)], + ), + ( + [datetime(2000, 1, 2), pd.NaT, pd.NaT], + [datetime(2000, 1, 1), datetime(2000, 1, 2), datetime(2000, 1, 3)], + [datetime(2000, 1, 2), datetime(2000, 1, 2), datetime(2000, 1, 3)], + ), + ( + [datetime(2000, 1, 1), datetime(2000, 1, 2), datetime(2000, 1, 3)], + [datetime(2000, 1, 2), pd.NaT, pd.NaT], + [datetime(2000, 1, 1), datetime(2000, 1, 2), datetime(2000, 1, 3)], + ), + ), + ) + def test_combine_first_convert_datatime_correctly( + self, data1, data2, data_expected + ): + # GH 3593 + + df1, df2 = DataFrame({"a": data1}), DataFrame({"a": data2}) + result = df1.combine_first(df2) + expected = DataFrame({"a": data_expected}) + tm.assert_frame_equal(result, expected) + + def test_combine_first_align_nan(self): + # GH 7509 (not fixed) + dfa = DataFrame([[pd.Timestamp("2011-01-01"), 2]], columns=["a", "b"]) + dfb = DataFrame([[4], [5]], columns=["b"]) + assert dfa["a"].dtype == "datetime64[ns]" + assert dfa["b"].dtype == "int64" + + res = dfa.combine_first(dfb) + exp = DataFrame( + {"a": [pd.Timestamp("2011-01-01"), pd.NaT], "b": [2, 5]}, + columns=["a", "b"], + ) + tm.assert_frame_equal(res, exp) + assert res["a"].dtype == "datetime64[ns]" + # TODO: this must be int64 + assert res["b"].dtype == "int64" + + res = dfa.iloc[:0].combine_first(dfb) + exp = DataFrame({"a": [np.nan, np.nan], "b": [4, 5]}, columns=["a", "b"]) + tm.assert_frame_equal(res, exp) + # TODO: this must be datetime64 + assert res["a"].dtype == "float64" + # TODO: this must be int64 + assert res["b"].dtype == "int64" + + def test_combine_first_timezone(self, unit): + # see gh-7630 + data1 = pd.to_datetime("20100101 01:01").tz_localize("UTC").as_unit(unit) + df1 = DataFrame( + columns=["UTCdatetime", "abc"], + data=data1, + index=pd.date_range("20140627", periods=1), + ) + data2 = pd.to_datetime("20121212 12:12").tz_localize("UTC").as_unit(unit) + df2 = DataFrame( + columns=["UTCdatetime", "xyz"], + data=data2, + index=pd.date_range("20140628", periods=1), + ) + res = df2[["UTCdatetime"]].combine_first(df1) + exp = DataFrame( + { + "UTCdatetime": [ + pd.Timestamp("2010-01-01 01:01", tz="UTC"), + pd.Timestamp("2012-12-12 12:12", tz="UTC"), + ], + "abc": [pd.Timestamp("2010-01-01 01:01:00", tz="UTC"), pd.NaT], + }, + columns=["UTCdatetime", "abc"], + index=pd.date_range("20140627", periods=2, freq="D"), + dtype=f"datetime64[{unit}, UTC]", + ) + assert res["UTCdatetime"].dtype == f"datetime64[{unit}, UTC]" + assert res["abc"].dtype == f"datetime64[{unit}, UTC]" + + tm.assert_frame_equal(res, exp) + + def test_combine_first_timezone2(self, unit): + # see gh-10567 + dts1 = pd.date_range("2015-01-01", "2015-01-05", tz="UTC", unit=unit) + df1 = DataFrame({"DATE": dts1}) + dts2 = pd.date_range("2015-01-03", "2015-01-05", tz="UTC", unit=unit) + df2 = DataFrame({"DATE": dts2}) + + res = df1.combine_first(df2) + tm.assert_frame_equal(res, df1) + assert res["DATE"].dtype == f"datetime64[{unit}, UTC]" + + def test_combine_first_timezone3(self, unit): + dts1 = pd.DatetimeIndex( + ["2011-01-01", "NaT", "2011-01-03", "2011-01-04"], tz="US/Eastern" + ).as_unit(unit) + df1 = DataFrame({"DATE": dts1}, index=[1, 3, 5, 7]) + dts2 = pd.DatetimeIndex( + ["2012-01-01", "2012-01-02", "2012-01-03"], tz="US/Eastern" + ).as_unit(unit) + df2 = DataFrame({"DATE": dts2}, index=[2, 4, 5]) + + res = df1.combine_first(df2) + exp_dts = pd.DatetimeIndex( + [ + "2011-01-01", + "2012-01-01", + "NaT", + "2012-01-02", + "2011-01-03", + "2011-01-04", + ], + tz="US/Eastern", + ).as_unit(unit) + exp = DataFrame({"DATE": exp_dts}, index=[1, 2, 3, 4, 5, 7]) + tm.assert_frame_equal(res, exp) + + # FIXME: parametrizing over unit breaks on non-nano + def test_combine_first_timezone4(self): + # different tz + dts1 = pd.date_range("2015-01-01", "2015-01-05", tz="US/Eastern") + df1 = DataFrame({"DATE": dts1}) + dts2 = pd.date_range("2015-01-03", "2015-01-05") + df2 = DataFrame({"DATE": dts2}) + + # if df1 doesn't have NaN, keep its dtype + res = df1.combine_first(df2) + tm.assert_frame_equal(res, df1) + assert res["DATE"].dtype == "datetime64[ns, US/Eastern]" + + def test_combine_first_timezone5(self, unit): + dts1 = pd.date_range("2015-01-01", "2015-01-02", tz="US/Eastern", unit=unit) + df1 = DataFrame({"DATE": dts1}) + dts2 = pd.date_range("2015-01-01", "2015-01-03", unit=unit) + df2 = DataFrame({"DATE": dts2}) + + res = df1.combine_first(df2) + exp_dts = [ + pd.Timestamp("2015-01-01", tz="US/Eastern"), + pd.Timestamp("2015-01-02", tz="US/Eastern"), + pd.Timestamp("2015-01-03"), + ] + exp = DataFrame({"DATE": exp_dts}) + tm.assert_frame_equal(res, exp) + assert res["DATE"].dtype == "object" + + def test_combine_first_timedelta(self): + data1 = pd.TimedeltaIndex(["1 day", "NaT", "3 day", "4day"]) + df1 = DataFrame({"TD": data1}, index=[1, 3, 5, 7]) + data2 = pd.TimedeltaIndex(["10 day", "11 day", "12 day"]) + df2 = DataFrame({"TD": data2}, index=[2, 4, 5]) + + res = df1.combine_first(df2) + exp_dts = pd.TimedeltaIndex( + ["1 day", "10 day", "NaT", "11 day", "3 day", "4 day"] + ) + exp = DataFrame({"TD": exp_dts}, index=[1, 2, 3, 4, 5, 7]) + tm.assert_frame_equal(res, exp) + assert res["TD"].dtype == "timedelta64[ns]" + + def test_combine_first_period(self): + data1 = pd.PeriodIndex(["2011-01", "NaT", "2011-03", "2011-04"], freq="M") + df1 = DataFrame({"P": data1}, index=[1, 3, 5, 7]) + data2 = pd.PeriodIndex(["2012-01-01", "2012-02", "2012-03"], freq="M") + df2 = DataFrame({"P": data2}, index=[2, 4, 5]) + + res = df1.combine_first(df2) + exp_dts = pd.PeriodIndex( + ["2011-01", "2012-01", "NaT", "2012-02", "2011-03", "2011-04"], freq="M" + ) + exp = DataFrame({"P": exp_dts}, index=[1, 2, 3, 4, 5, 7]) + tm.assert_frame_equal(res, exp) + assert res["P"].dtype == data1.dtype + + # different freq + dts2 = pd.PeriodIndex(["2012-01-01", "2012-01-02", "2012-01-03"], freq="D") + df2 = DataFrame({"P": dts2}, index=[2, 4, 5]) + + res = df1.combine_first(df2) + exp_dts = [ + pd.Period("2011-01", freq="M"), + pd.Period("2012-01-01", freq="D"), + pd.NaT, + pd.Period("2012-01-02", freq="D"), + pd.Period("2011-03", freq="M"), + pd.Period("2011-04", freq="M"), + ] + exp = DataFrame({"P": exp_dts}, index=[1, 2, 3, 4, 5, 7]) + tm.assert_frame_equal(res, exp) + assert res["P"].dtype == "object" + + def test_combine_first_int(self): + # GH14687 - integer series that do no align exactly + + df1 = DataFrame({"a": [0, 1, 3, 5]}, dtype="int64") + df2 = DataFrame({"a": [1, 4]}, dtype="int64") + + result_12 = df1.combine_first(df2) + expected_12 = DataFrame({"a": [0, 1, 3, 5]}) + tm.assert_frame_equal(result_12, expected_12) + + result_21 = df2.combine_first(df1) + expected_21 = DataFrame({"a": [1, 4, 3, 5]}) + tm.assert_frame_equal(result_21, expected_21) + + @pytest.mark.parametrize("val", [1, 1.0]) + def test_combine_first_with_asymmetric_other(self, val): + # see gh-20699 + df1 = DataFrame({"isNum": [val]}) + df2 = DataFrame({"isBool": [True]}) + + res = df1.combine_first(df2) + exp = DataFrame({"isBool": [True], "isNum": [val]}) + + tm.assert_frame_equal(res, exp) + + def test_combine_first_string_dtype_only_na(self, nullable_string_dtype): + # GH: 37519 + df = DataFrame( + {"a": ["962", "85"], "b": [pd.NA] * 2}, dtype=nullable_string_dtype + ) + df2 = DataFrame({"a": ["85"], "b": [pd.NA]}, dtype=nullable_string_dtype) + df.set_index(["a", "b"], inplace=True) + df2.set_index(["a", "b"], inplace=True) + result = df.combine_first(df2) + expected = DataFrame( + {"a": ["962", "85"], "b": [pd.NA] * 2}, dtype=nullable_string_dtype + ).set_index(["a", "b"]) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "scalar1, scalar2", + [ + (datetime(2020, 1, 1), datetime(2020, 1, 2)), + (pd.Period("2020-01-01", "D"), pd.Period("2020-01-02", "D")), + (pd.Timedelta("89 days"), pd.Timedelta("60 min")), + (pd.Interval(left=0, right=1), pd.Interval(left=2, right=3, closed="left")), + ], +) +def test_combine_first_timestamp_bug(scalar1, scalar2, nulls_fixture): + # GH28481 + na_value = nulls_fixture + + frame = DataFrame([[na_value, na_value]], columns=["a", "b"]) + other = DataFrame([[scalar1, scalar2]], columns=["b", "c"]) + + common_dtype = find_common_type([frame.dtypes["b"], other.dtypes["b"]]) + + if is_dtype_equal(common_dtype, "object") or frame.dtypes["b"] == other.dtypes["b"]: + val = scalar1 + else: + val = na_value + + result = frame.combine_first(other) + + expected = DataFrame([[na_value, val, scalar2]], columns=["a", "b", "c"]) + + expected["b"] = expected["b"].astype(common_dtype) + + tm.assert_frame_equal(result, expected) + + +def test_combine_first_timestamp_bug_NaT(): + # GH28481 + frame = DataFrame([[pd.NaT, pd.NaT]], columns=["a", "b"]) + other = DataFrame( + [[datetime(2020, 1, 1), datetime(2020, 1, 2)]], columns=["b", "c"] + ) + + result = frame.combine_first(other) + expected = DataFrame( + [[pd.NaT, datetime(2020, 1, 1), datetime(2020, 1, 2)]], columns=["a", "b", "c"] + ) + + tm.assert_frame_equal(result, expected) + + +def test_combine_first_with_nan_multiindex(): + # gh-36562 + + mi1 = MultiIndex.from_arrays( + [["b", "b", "c", "a", "b", np.nan], [1, 2, 3, 4, 5, 6]], names=["a", "b"] + ) + df = DataFrame({"c": [1, 1, 1, 1, 1, 1]}, index=mi1) + mi2 = MultiIndex.from_arrays( + [["a", "b", "c", "a", "b", "d"], [1, 1, 1, 1, 1, 1]], names=["a", "b"] + ) + s = Series([1, 2, 3, 4, 5, 6], index=mi2) + res = df.combine_first(DataFrame({"d": s})) + mi_expected = MultiIndex.from_arrays( + [ + ["a", "a", "a", "b", "b", "b", "b", "c", "c", "d", np.nan], + [1, 1, 4, 1, 1, 2, 5, 1, 3, 1, 6], + ], + names=["a", "b"], + ) + expected = DataFrame( + { + "c": [np.nan, np.nan, 1, 1, 1, 1, 1, np.nan, 1, np.nan, 1], + "d": [1.0, 4.0, np.nan, 2.0, 5.0, np.nan, np.nan, 3.0, np.nan, 6.0, np.nan], + }, + index=mi_expected, + ) + tm.assert_frame_equal(res, expected) + + +def test_combine_preserve_dtypes(): + # GH7509 + a_column = Series(["a", "b"], index=range(2)) + b_column = Series(range(2), index=range(2)) + df1 = DataFrame({"A": a_column, "B": b_column}) + + c_column = Series(["a", "b"], index=range(5, 7)) + b_column = Series(range(-1, 1), index=range(5, 7)) + df2 = DataFrame({"B": b_column, "C": c_column}) + + expected = DataFrame( + { + "A": ["a", "b", np.nan, np.nan], + "B": [0, 1, -1, 0], + "C": [np.nan, np.nan, "a", "b"], + }, + index=[0, 1, 5, 6], + ) + combined = df1.combine_first(df2) + tm.assert_frame_equal(combined, expected) + + +def test_combine_first_duplicates_rows_for_nan_index_values(): + # GH39881 + df1 = DataFrame( + {"x": [9, 10, 11]}, + index=MultiIndex.from_arrays([[1, 2, 3], [np.nan, 5, 6]], names=["a", "b"]), + ) + + df2 = DataFrame( + {"y": [12, 13, 14]}, + index=MultiIndex.from_arrays([[1, 2, 4], [np.nan, 5, 7]], names=["a", "b"]), + ) + + expected = DataFrame( + { + "x": [9.0, 10.0, 11.0, np.nan], + "y": [12.0, 13.0, np.nan, 14.0], + }, + index=MultiIndex.from_arrays( + [[1, 2, 3, 4], [np.nan, 5, 6, 7]], names=["a", "b"] + ), + ) + combined = df1.combine_first(df2) + tm.assert_frame_equal(combined, expected) + + +def test_combine_first_int64_not_cast_to_float64(): + # GH 28613 + df_1 = DataFrame({"A": [1, 2, 3], "B": [4, 5, 6]}) + df_2 = DataFrame({"A": [1, 20, 30], "B": [40, 50, 60], "C": [12, 34, 65]}) + result = df_1.combine_first(df_2) + expected = DataFrame({"A": [1, 2, 3], "B": [4, 5, 6], "C": [12, 34, 65]}) + tm.assert_frame_equal(result, expected) + + +def test_midx_losing_dtype(): + # GH#49830 + midx = MultiIndex.from_arrays([[0, 0], [np.nan, np.nan]]) + midx2 = MultiIndex.from_arrays([[1, 1], [np.nan, np.nan]]) + df1 = DataFrame({"a": [None, 4]}, index=midx) + df2 = DataFrame({"a": [3, 3]}, index=midx2) + result = df1.combine_first(df2) + expected_midx = MultiIndex.from_arrays( + [[0, 0, 1, 1], [np.nan, np.nan, np.nan, np.nan]] + ) + expected = DataFrame({"a": [np.nan, 4, 3, 3]}, index=expected_midx) + tm.assert_frame_equal(result, expected) + + +def test_combine_first_empty_columns(): + left = DataFrame(columns=["a", "b"]) + right = DataFrame(columns=["a", "c"]) + result = left.combine_first(right) + expected = DataFrame(columns=["a", "b", "c"]) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_compare.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_compare.py new file mode 100644 index 0000000000000000000000000000000000000000..a4d0a7068a3a650beb11529065d0b62ab702143b --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_compare.py @@ -0,0 +1,305 @@ +import numpy as np +import pytest + +from pandas.compat.numpy import np_version_gte1p25 + +import pandas as pd +import pandas._testing as tm + + +@pytest.mark.parametrize("align_axis", [0, 1, "index", "columns"]) +def test_compare_axis(align_axis): + # GH#30429 + df = pd.DataFrame( + {"col1": ["a", "b", "c"], "col2": [1.0, 2.0, np.nan], "col3": [1.0, 2.0, 3.0]}, + columns=["col1", "col2", "col3"], + ) + df2 = df.copy() + df2.loc[0, "col1"] = "c" + df2.loc[2, "col3"] = 4.0 + + result = df.compare(df2, align_axis=align_axis) + + if align_axis in (1, "columns"): + indices = pd.Index([0, 2]) + columns = pd.MultiIndex.from_product([["col1", "col3"], ["self", "other"]]) + expected = pd.DataFrame( + [["a", "c", np.nan, np.nan], [np.nan, np.nan, 3.0, 4.0]], + index=indices, + columns=columns, + ) + else: + indices = pd.MultiIndex.from_product([[0, 2], ["self", "other"]]) + columns = pd.Index(["col1", "col3"]) + expected = pd.DataFrame( + [["a", np.nan], ["c", np.nan], [np.nan, 3.0], [np.nan, 4.0]], + index=indices, + columns=columns, + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "keep_shape, keep_equal", + [ + (True, False), + (False, True), + (True, True), + # False, False case is already covered in test_compare_axis + ], +) +def test_compare_various_formats(keep_shape, keep_equal): + df = pd.DataFrame( + {"col1": ["a", "b", "c"], "col2": [1.0, 2.0, np.nan], "col3": [1.0, 2.0, 3.0]}, + columns=["col1", "col2", "col3"], + ) + df2 = df.copy() + df2.loc[0, "col1"] = "c" + df2.loc[2, "col3"] = 4.0 + + result = df.compare(df2, keep_shape=keep_shape, keep_equal=keep_equal) + + if keep_shape: + indices = pd.Index([0, 1, 2]) + columns = pd.MultiIndex.from_product( + [["col1", "col2", "col3"], ["self", "other"]] + ) + if keep_equal: + expected = pd.DataFrame( + [ + ["a", "c", 1.0, 1.0, 1.0, 1.0], + ["b", "b", 2.0, 2.0, 2.0, 2.0], + ["c", "c", np.nan, np.nan, 3.0, 4.0], + ], + index=indices, + columns=columns, + ) + else: + expected = pd.DataFrame( + [ + ["a", "c", np.nan, np.nan, np.nan, np.nan], + [np.nan, np.nan, np.nan, np.nan, np.nan, np.nan], + [np.nan, np.nan, np.nan, np.nan, 3.0, 4.0], + ], + index=indices, + columns=columns, + ) + else: + indices = pd.Index([0, 2]) + columns = pd.MultiIndex.from_product([["col1", "col3"], ["self", "other"]]) + expected = pd.DataFrame( + [["a", "c", 1.0, 1.0], ["c", "c", 3.0, 4.0]], index=indices, columns=columns + ) + tm.assert_frame_equal(result, expected) + + +def test_compare_with_equal_nulls(): + # We want to make sure two NaNs are considered the same + # and dropped where applicable + df = pd.DataFrame( + {"col1": ["a", "b", "c"], "col2": [1.0, 2.0, np.nan], "col3": [1.0, 2.0, 3.0]}, + columns=["col1", "col2", "col3"], + ) + df2 = df.copy() + df2.loc[0, "col1"] = "c" + + result = df.compare(df2) + indices = pd.Index([0]) + columns = pd.MultiIndex.from_product([["col1"], ["self", "other"]]) + expected = pd.DataFrame([["a", "c"]], index=indices, columns=columns) + tm.assert_frame_equal(result, expected) + + +def test_compare_with_non_equal_nulls(): + # We want to make sure the relevant NaNs do not get dropped + # even if the entire row or column are NaNs + df = pd.DataFrame( + {"col1": ["a", "b", "c"], "col2": [1.0, 2.0, np.nan], "col3": [1.0, 2.0, 3.0]}, + columns=["col1", "col2", "col3"], + ) + df2 = df.copy() + df2.loc[0, "col1"] = "c" + df2.loc[2, "col3"] = np.nan + + result = df.compare(df2) + + indices = pd.Index([0, 2]) + columns = pd.MultiIndex.from_product([["col1", "col3"], ["self", "other"]]) + expected = pd.DataFrame( + [["a", "c", np.nan, np.nan], [np.nan, np.nan, 3.0, np.nan]], + index=indices, + columns=columns, + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("align_axis", [0, 1]) +def test_compare_multi_index(align_axis): + df = pd.DataFrame( + {"col1": ["a", "b", "c"], "col2": [1.0, 2.0, np.nan], "col3": [1.0, 2.0, 3.0]} + ) + df.columns = pd.MultiIndex.from_arrays([["a", "a", "b"], ["col1", "col2", "col3"]]) + df.index = pd.MultiIndex.from_arrays([["x", "x", "y"], [0, 1, 2]]) + + df2 = df.copy() + df2.iloc[0, 0] = "c" + df2.iloc[2, 2] = 4.0 + + result = df.compare(df2, align_axis=align_axis) + + if align_axis == 0: + indices = pd.MultiIndex.from_arrays( + [["x", "x", "y", "y"], [0, 0, 2, 2], ["self", "other", "self", "other"]] + ) + columns = pd.MultiIndex.from_arrays([["a", "b"], ["col1", "col3"]]) + data = [["a", np.nan], ["c", np.nan], [np.nan, 3.0], [np.nan, 4.0]] + else: + indices = pd.MultiIndex.from_arrays([["x", "y"], [0, 2]]) + columns = pd.MultiIndex.from_arrays( + [ + ["a", "a", "b", "b"], + ["col1", "col1", "col3", "col3"], + ["self", "other", "self", "other"], + ] + ) + data = [["a", "c", np.nan, np.nan], [np.nan, np.nan, 3.0, 4.0]] + + expected = pd.DataFrame(data=data, index=indices, columns=columns) + tm.assert_frame_equal(result, expected) + + +def test_compare_unaligned_objects(): + # test DataFrames with different indices + msg = ( + r"Can only compare identically-labeled \(both index and columns\) DataFrame " + "objects" + ) + with pytest.raises(ValueError, match=msg): + df1 = pd.DataFrame([1, 2, 3], index=["a", "b", "c"]) + df2 = pd.DataFrame([1, 2, 3], index=["a", "b", "d"]) + df1.compare(df2) + + # test DataFrames with different shapes + msg = ( + r"Can only compare identically-labeled \(both index and columns\) DataFrame " + "objects" + ) + with pytest.raises(ValueError, match=msg): + df1 = pd.DataFrame(np.ones((3, 3))) + df2 = pd.DataFrame(np.zeros((2, 1))) + df1.compare(df2) + + +def test_compare_result_names(): + # GH 44354 + df1 = pd.DataFrame( + {"col1": ["a", "b", "c"], "col2": [1.0, 2.0, np.nan], "col3": [1.0, 2.0, 3.0]}, + ) + df2 = pd.DataFrame( + { + "col1": ["c", "b", "c"], + "col2": [1.0, 2.0, np.nan], + "col3": [1.0, 2.0, np.nan], + }, + ) + result = df1.compare(df2, result_names=("left", "right")) + expected = pd.DataFrame( + { + ("col1", "left"): {0: "a", 2: np.nan}, + ("col1", "right"): {0: "c", 2: np.nan}, + ("col3", "left"): {0: np.nan, 2: 3.0}, + ("col3", "right"): {0: np.nan, 2: np.nan}, + } + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "result_names", + [ + [1, 2], + "HK", + {"2": 2, "3": 3}, + 3, + 3.0, + ], +) +def test_invalid_input_result_names(result_names): + # GH 44354 + df1 = pd.DataFrame( + {"col1": ["a", "b", "c"], "col2": [1.0, 2.0, np.nan], "col3": [1.0, 2.0, 3.0]}, + ) + df2 = pd.DataFrame( + { + "col1": ["c", "b", "c"], + "col2": [1.0, 2.0, np.nan], + "col3": [1.0, 2.0, np.nan], + }, + ) + with pytest.raises( + TypeError, + match=( + f"Passing 'result_names' as a {type(result_names)} is not " + "supported. Provide 'result_names' as a tuple instead." + ), + ): + df1.compare(df2, result_names=result_names) + + +@pytest.mark.parametrize( + "val1,val2", + [(4, pd.NA), (pd.NA, pd.NA), (pd.NA, 4)], +) +def test_compare_ea_and_np_dtype(val1, val2): + # GH 48966 + arr = [4.0, val1] + ser = pd.Series([1, val2], dtype="Int64") + + df1 = pd.DataFrame({"a": arr, "b": [1.0, 2]}) + df2 = pd.DataFrame({"a": ser, "b": [1.0, 2]}) + expected = pd.DataFrame( + { + ("a", "self"): arr, + ("a", "other"): ser, + ("b", "self"): np.nan, + ("b", "other"): np.nan, + } + ) + if val1 is pd.NA and val2 is pd.NA: + # GH#18463 TODO: is this really the desired behavior? + expected.loc[1, ("a", "self")] = np.nan + + if val1 is pd.NA and np_version_gte1p25: + # can't compare with numpy array if it contains pd.NA + with pytest.raises(TypeError, match="boolean value of NA is ambiguous"): + result = df1.compare(df2, keep_shape=True) + else: + result = df1.compare(df2, keep_shape=True) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "df1_val,df2_val,diff_self,diff_other", + [ + (4, 3, 4, 3), + (4, 4, pd.NA, pd.NA), + (4, pd.NA, 4, pd.NA), + (pd.NA, pd.NA, pd.NA, pd.NA), + ], +) +def test_compare_nullable_int64_dtype(df1_val, df2_val, diff_self, diff_other): + # GH 48966 + df1 = pd.DataFrame({"a": pd.Series([df1_val, pd.NA], dtype="Int64"), "b": [1.0, 2]}) + df2 = df1.copy() + df2.loc[0, "a"] = df2_val + + expected = pd.DataFrame( + { + ("a", "self"): pd.Series([diff_self, pd.NA], dtype="Int64"), + ("a", "other"): pd.Series([diff_other, pd.NA], dtype="Int64"), + ("b", "self"): np.nan, + ("b", "other"): np.nan, + } + ) + result = df1.compare(df2, keep_shape=True) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_convert_dtypes.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_convert_dtypes.py new file mode 100644 index 0000000000000000000000000000000000000000..e7f6e5d625d3ece20131a5a719bf4f545b21a19b --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_convert_dtypes.py @@ -0,0 +1,198 @@ +import datetime + +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm + + +class TestConvertDtypes: + @pytest.mark.parametrize( + "convert_integer, expected", [(False, np.dtype("int32")), (True, "Int32")] + ) + def test_convert_dtypes(self, convert_integer, expected, string_storage): + # Specific types are tested in tests/series/test_dtypes.py + # Just check that it works for DataFrame here + df = pd.DataFrame( + { + "a": pd.Series([1, 2, 3], dtype=np.dtype("int32")), + "b": pd.Series(["x", "y", "z"], dtype=np.dtype("O")), + } + ) + with pd.option_context("string_storage", string_storage): + result = df.convert_dtypes(True, True, convert_integer, False) + expected = pd.DataFrame( + { + "a": pd.Series([1, 2, 3], dtype=expected), + "b": pd.Series(["x", "y", "z"], dtype=f"string[{string_storage}]"), + } + ) + tm.assert_frame_equal(result, expected) + + def test_convert_empty(self): + # Empty DataFrame can pass convert_dtypes, see GH#40393 + empty_df = pd.DataFrame() + tm.assert_frame_equal(empty_df, empty_df.convert_dtypes()) + + def test_convert_dtypes_retain_column_names(self): + # GH#41435 + df = pd.DataFrame({"a": [1, 2], "b": [3, 4]}) + df.columns.name = "cols" + + result = df.convert_dtypes() + tm.assert_index_equal(result.columns, df.columns) + assert result.columns.name == "cols" + + def test_pyarrow_dtype_backend(self): + pa = pytest.importorskip("pyarrow") + df = pd.DataFrame( + { + "a": pd.Series([1, 2, 3], dtype=np.dtype("int32")), + "b": pd.Series(["x", "y", None], dtype=np.dtype("O")), + "c": pd.Series([True, False, None], dtype=np.dtype("O")), + "d": pd.Series([np.nan, 100.5, 200], dtype=np.dtype("float")), + "e": pd.Series(pd.date_range("2022", periods=3)), + "f": pd.Series(pd.date_range("2022", periods=3, tz="UTC").as_unit("s")), + "g": pd.Series(pd.timedelta_range("1D", periods=3)), + } + ) + result = df.convert_dtypes(dtype_backend="pyarrow") + expected = pd.DataFrame( + { + "a": pd.arrays.ArrowExtensionArray( + pa.array([1, 2, 3], type=pa.int32()) + ), + "b": pd.arrays.ArrowExtensionArray(pa.array(["x", "y", None])), + "c": pd.arrays.ArrowExtensionArray(pa.array([True, False, None])), + "d": pd.arrays.ArrowExtensionArray(pa.array([None, 100.5, 200.0])), + "e": pd.arrays.ArrowExtensionArray( + pa.array( + [ + datetime.datetime(2022, 1, 1), + datetime.datetime(2022, 1, 2), + datetime.datetime(2022, 1, 3), + ], + type=pa.timestamp(unit="ns"), + ) + ), + "f": pd.arrays.ArrowExtensionArray( + pa.array( + [ + datetime.datetime(2022, 1, 1), + datetime.datetime(2022, 1, 2), + datetime.datetime(2022, 1, 3), + ], + type=pa.timestamp(unit="s", tz="UTC"), + ) + ), + "g": pd.arrays.ArrowExtensionArray( + pa.array( + [ + datetime.timedelta(1), + datetime.timedelta(2), + datetime.timedelta(3), + ], + type=pa.duration("ns"), + ) + ), + } + ) + tm.assert_frame_equal(result, expected) + + def test_pyarrow_dtype_backend_already_pyarrow(self): + pytest.importorskip("pyarrow") + expected = pd.DataFrame([1, 2, 3], dtype="int64[pyarrow]") + result = expected.convert_dtypes(dtype_backend="pyarrow") + tm.assert_frame_equal(result, expected) + + def test_pyarrow_dtype_backend_from_pandas_nullable(self): + pa = pytest.importorskip("pyarrow") + df = pd.DataFrame( + { + "a": pd.Series([1, 2, None], dtype="Int32"), + "b": pd.Series(["x", "y", None], dtype="string[python]"), + "c": pd.Series([True, False, None], dtype="boolean"), + "d": pd.Series([None, 100.5, 200], dtype="Float64"), + } + ) + result = df.convert_dtypes(dtype_backend="pyarrow") + expected = pd.DataFrame( + { + "a": pd.arrays.ArrowExtensionArray( + pa.array([1, 2, None], type=pa.int32()) + ), + "b": pd.arrays.ArrowExtensionArray(pa.array(["x", "y", None])), + "c": pd.arrays.ArrowExtensionArray(pa.array([True, False, None])), + "d": pd.arrays.ArrowExtensionArray(pa.array([None, 100.5, 200.0])), + } + ) + tm.assert_frame_equal(result, expected) + + def test_pyarrow_dtype_empty_object(self): + # GH 50970 + pytest.importorskip("pyarrow") + expected = pd.DataFrame(columns=[0]) + result = expected.convert_dtypes(dtype_backend="pyarrow") + tm.assert_frame_equal(result, expected) + + def test_pyarrow_engine_lines_false(self): + # GH 48893 + df = pd.DataFrame({"a": [1, 2, 3]}) + msg = ( + "dtype_backend numpy is invalid, only 'numpy_nullable' and " + "'pyarrow' are allowed." + ) + with pytest.raises(ValueError, match=msg): + df.convert_dtypes(dtype_backend="numpy") + + def test_pyarrow_backend_no_conversion(self): + # GH#52872 + pytest.importorskip("pyarrow") + df = pd.DataFrame({"a": [1, 2], "b": 1.5, "c": True, "d": "x"}) + expected = df.copy() + result = df.convert_dtypes( + convert_floating=False, + convert_integer=False, + convert_boolean=False, + convert_string=False, + dtype_backend="pyarrow", + ) + tm.assert_frame_equal(result, expected) + + def test_convert_dtypes_pyarrow_to_np_nullable(self): + # GH 53648 + pytest.importorskip("pyarrow") + ser = pd.DataFrame(range(2), dtype="int32[pyarrow]") + result = ser.convert_dtypes(dtype_backend="numpy_nullable") + expected = pd.DataFrame(range(2), dtype="Int32") + tm.assert_frame_equal(result, expected) + + def test_convert_dtypes_pyarrow_timestamp(self): + # GH 54191 + pytest.importorskip("pyarrow") + ser = pd.Series(pd.date_range("2020-01-01", "2020-01-02", freq="1min")) + expected = ser.astype("timestamp[ms][pyarrow]") + result = expected.convert_dtypes(dtype_backend="pyarrow") + tm.assert_series_equal(result, expected) + + def test_convert_dtypes_avoid_block_splitting(self): + # GH#55341 + df = pd.DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": "a"}) + result = df.convert_dtypes(convert_integer=False) + expected = pd.DataFrame( + { + "a": [1, 2, 3], + "b": [4, 5, 6], + "c": pd.Series(["a"] * 3, dtype="string[python]"), + } + ) + tm.assert_frame_equal(result, expected) + assert result._mgr.nblocks == 2 + + def test_convert_dtypes_from_arrow(self): + # GH#56581 + df = pd.DataFrame([["a", datetime.time(18, 12)]], columns=["a", "b"]) + result = df.convert_dtypes() + expected = df.astype({"a": "string[python]"}) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_copy.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_copy.py new file mode 100644 index 0000000000000000000000000000000000000000..e7901ed36310668dc21b96d44fed0686de368b1f --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_copy.py @@ -0,0 +1,64 @@ +import numpy as np +import pytest + +import pandas.util._test_decorators as td + +from pandas import DataFrame +import pandas._testing as tm + + +class TestCopy: + @pytest.mark.parametrize("attr", ["index", "columns"]) + def test_copy_index_name_checking(self, float_frame, attr): + # don't want to be able to modify the index stored elsewhere after + # making a copy + ind = getattr(float_frame, attr) + ind.name = None + cp = float_frame.copy() + getattr(cp, attr).name = "foo" + assert getattr(float_frame, attr).name is None + + @td.skip_copy_on_write_invalid_test + def test_copy_cache(self): + # GH#31784 _item_cache not cleared on copy causes incorrect reads after updates + df = DataFrame({"a": [1]}) + + df["x"] = [0] + df["a"] + + df.copy() + + df["a"].values[0] = -1 + + tm.assert_frame_equal(df, DataFrame({"a": [-1], "x": [0]})) + + df["y"] = [0] + + assert df["a"].values[0] == -1 + tm.assert_frame_equal(df, DataFrame({"a": [-1], "x": [0], "y": [0]})) + + def test_copy(self, float_frame, float_string_frame): + cop = float_frame.copy() + cop["E"] = cop["A"] + assert "E" not in float_frame + + # copy objects + copy = float_string_frame.copy() + assert copy._mgr is not float_string_frame._mgr + + @td.skip_array_manager_invalid_test + def test_copy_consolidates(self): + # GH#42477 + df = DataFrame( + { + "a": np.random.default_rng(2).integers(0, 100, size=55), + "b": np.random.default_rng(2).integers(0, 100, size=55), + } + ) + + for i in range(10): + df.loc[:, f"n_{i}"] = np.random.default_rng(2).integers(0, 100, size=55) + + assert len(df._mgr.blocks) == 11 + result = df.copy() + assert len(result._mgr.blocks) == 1 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_count.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_count.py new file mode 100644 index 0000000000000000000000000000000000000000..1553a8a86305dd931c5378245daf272472d41b20 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_count.py @@ -0,0 +1,39 @@ +from pandas import ( + DataFrame, + Series, +) +import pandas._testing as tm + + +class TestDataFrameCount: + def test_count(self): + # corner case + frame = DataFrame() + ct1 = frame.count(1) + assert isinstance(ct1, Series) + + ct2 = frame.count(0) + assert isinstance(ct2, Series) + + # GH#423 + df = DataFrame(index=range(10)) + result = df.count(1) + expected = Series(0, index=df.index) + tm.assert_series_equal(result, expected) + + df = DataFrame(columns=range(10)) + result = df.count(0) + expected = Series(0, index=df.columns) + tm.assert_series_equal(result, expected) + + df = DataFrame() + result = df.count() + expected = Series(dtype="int64") + tm.assert_series_equal(result, expected) + + def test_count_objects(self, float_string_frame): + dm = DataFrame(float_string_frame._series) + df = DataFrame(float_string_frame._series) + + tm.assert_series_equal(dm.count(), df.count()) + tm.assert_series_equal(dm.count(1), df.count(1)) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_cov_corr.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_cov_corr.py new file mode 100644 index 0000000000000000000000000000000000000000..9abf1996c43e6bc262405a7d132986edc3219614 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_cov_corr.py @@ -0,0 +1,470 @@ +import numpy as np +import pytest + +import pandas.util._test_decorators as td + +import pandas as pd +from pandas import ( + DataFrame, + Index, + Series, + date_range, + isna, +) +import pandas._testing as tm + + +class TestDataFrameCov: + def test_cov(self, float_frame, float_string_frame): + # min_periods no NAs (corner case) + expected = float_frame.cov() + result = float_frame.cov(min_periods=len(float_frame)) + + tm.assert_frame_equal(expected, result) + + result = float_frame.cov(min_periods=len(float_frame) + 1) + assert isna(result.values).all() + + # with NAs + frame = float_frame.copy() + frame.iloc[:5, frame.columns.get_loc("A")] = np.nan + frame.iloc[5:10, frame.columns.get_loc("B")] = np.nan + result = frame.cov(min_periods=len(frame) - 8) + expected = frame.cov() + expected.loc["A", "B"] = np.nan + expected.loc["B", "A"] = np.nan + tm.assert_frame_equal(result, expected) + + # regular + result = frame.cov() + expected = frame["A"].cov(frame["C"]) + tm.assert_almost_equal(result["A"]["C"], expected) + + # fails on non-numeric types + with pytest.raises(ValueError, match="could not convert string to float"): + float_string_frame.cov() + result = float_string_frame.cov(numeric_only=True) + expected = float_string_frame.loc[:, ["A", "B", "C", "D"]].cov() + tm.assert_frame_equal(result, expected) + + # Single column frame + df = DataFrame(np.linspace(0.0, 1.0, 10)) + result = df.cov() + expected = DataFrame( + np.cov(df.values.T).reshape((1, 1)), index=df.columns, columns=df.columns + ) + tm.assert_frame_equal(result, expected) + df.loc[0] = np.nan + result = df.cov() + expected = DataFrame( + np.cov(df.values[1:].T).reshape((1, 1)), + index=df.columns, + columns=df.columns, + ) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("test_ddof", [None, 0, 1, 2, 3]) + def test_cov_ddof(self, test_ddof): + # GH#34611 + np_array1 = np.random.default_rng(2).random(10) + np_array2 = np.random.default_rng(2).random(10) + df = DataFrame({0: np_array1, 1: np_array2}) + result = df.cov(ddof=test_ddof) + expected_np = np.cov(np_array1, np_array2, ddof=test_ddof) + expected = DataFrame(expected_np) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "other_column", [pd.array([1, 2, 3]), np.array([1.0, 2.0, 3.0])] + ) + def test_cov_nullable_integer(self, other_column): + # https://github.com/pandas-dev/pandas/issues/33803 + data = DataFrame({"a": pd.array([1, 2, None]), "b": other_column}) + result = data.cov() + arr = np.array([[0.5, 0.5], [0.5, 1.0]]) + expected = DataFrame(arr, columns=["a", "b"], index=["a", "b"]) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("numeric_only", [True, False]) + def test_cov_numeric_only(self, numeric_only): + # when dtypes of pandas series are different + # then ndarray will have dtype=object, + # so it need to be properly handled + df = DataFrame({"a": [1, 0], "c": ["x", "y"]}) + expected = DataFrame(0.5, index=["a"], columns=["a"]) + if numeric_only: + result = df.cov(numeric_only=numeric_only) + tm.assert_frame_equal(result, expected) + else: + with pytest.raises(ValueError, match="could not convert string to float"): + df.cov(numeric_only=numeric_only) + + +class TestDataFrameCorr: + # DataFrame.corr(), as opposed to DataFrame.corrwith + + @pytest.mark.parametrize("method", ["pearson", "kendall", "spearman"]) + def test_corr_scipy_method(self, float_frame, method): + pytest.importorskip("scipy") + float_frame.loc[float_frame.index[:5], "A"] = np.nan + float_frame.loc[float_frame.index[5:10], "B"] = np.nan + float_frame.loc[float_frame.index[:10], "A"] = float_frame["A"][10:20].copy() + + correls = float_frame.corr(method=method) + expected = float_frame["A"].corr(float_frame["C"], method=method) + tm.assert_almost_equal(correls["A"]["C"], expected) + + # --------------------------------------------------------------------- + + def test_corr_non_numeric(self, float_string_frame): + with pytest.raises(ValueError, match="could not convert string to float"): + float_string_frame.corr() + result = float_string_frame.corr(numeric_only=True) + expected = float_string_frame.loc[:, ["A", "B", "C", "D"]].corr() + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("meth", ["pearson", "kendall", "spearman"]) + def test_corr_nooverlap(self, meth): + # nothing in common + pytest.importorskip("scipy") + df = DataFrame( + { + "A": [1, 1.5, 1, np.nan, np.nan, np.nan], + "B": [np.nan, np.nan, np.nan, 1, 1.5, 1], + "C": [np.nan, np.nan, np.nan, np.nan, np.nan, np.nan], + } + ) + rs = df.corr(meth) + assert isna(rs.loc["A", "B"]) + assert isna(rs.loc["B", "A"]) + assert rs.loc["A", "A"] == 1 + assert rs.loc["B", "B"] == 1 + assert isna(rs.loc["C", "C"]) + + @pytest.mark.parametrize("meth", ["pearson", "spearman"]) + def test_corr_constant(self, meth): + # constant --> all NA + df = DataFrame( + { + "A": [1, 1, 1, np.nan, np.nan, np.nan], + "B": [np.nan, np.nan, np.nan, 1, 1, 1], + } + ) + rs = df.corr(meth) + assert isna(rs.values).all() + + @pytest.mark.filterwarnings("ignore::RuntimeWarning") + @pytest.mark.parametrize("meth", ["pearson", "kendall", "spearman"]) + def test_corr_int_and_boolean(self, meth): + # when dtypes of pandas series are different + # then ndarray will have dtype=object, + # so it need to be properly handled + pytest.importorskip("scipy") + df = DataFrame({"a": [True, False], "b": [1, 0]}) + + expected = DataFrame(np.ones((2, 2)), index=["a", "b"], columns=["a", "b"]) + result = df.corr(meth) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("method", ["cov", "corr"]) + def test_corr_cov_independent_index_column(self, method): + # GH#14617 + df = DataFrame( + np.random.default_rng(2).standard_normal(4 * 10).reshape(10, 4), + columns=list("abcd"), + ) + result = getattr(df, method)() + assert result.index is not result.columns + assert result.index.equals(result.columns) + + def test_corr_invalid_method(self): + # GH#22298 + df = DataFrame(np.random.default_rng(2).normal(size=(10, 2))) + msg = "method must be either 'pearson', 'spearman', 'kendall', or a callable, " + with pytest.raises(ValueError, match=msg): + df.corr(method="____") + + def test_corr_int(self): + # dtypes other than float64 GH#1761 + df = DataFrame({"a": [1, 2, 3, 4], "b": [1, 2, 3, 4]}) + + df.cov() + df.corr() + + @pytest.mark.parametrize( + "nullable_column", [pd.array([1, 2, 3]), pd.array([1, 2, None])] + ) + @pytest.mark.parametrize( + "other_column", + [pd.array([1, 2, 3]), np.array([1.0, 2.0, 3.0]), np.array([1.0, 2.0, np.nan])], + ) + @pytest.mark.parametrize("method", ["pearson", "spearman", "kendall"]) + def test_corr_nullable_integer(self, nullable_column, other_column, method): + # https://github.com/pandas-dev/pandas/issues/33803 + pytest.importorskip("scipy") + data = DataFrame({"a": nullable_column, "b": other_column}) + result = data.corr(method=method) + expected = DataFrame(np.ones((2, 2)), columns=["a", "b"], index=["a", "b"]) + tm.assert_frame_equal(result, expected) + + def test_corr_item_cache(self, using_copy_on_write, warn_copy_on_write): + # Check that corr does not lead to incorrect entries in item_cache + + df = DataFrame({"A": range(10)}) + df["B"] = range(10)[::-1] + + ser = df["A"] # populate item_cache + assert len(df._mgr.arrays) == 2 # i.e. 2 blocks + + _ = df.corr(numeric_only=True) + + if using_copy_on_write: + ser.iloc[0] = 99 + assert df.loc[0, "A"] == 0 + else: + # Check that the corr didn't break link between ser and df + ser.values[0] = 99 + assert df.loc[0, "A"] == 99 + if not warn_copy_on_write: + assert df["A"] is ser + assert df.values[0, 0] == 99 + + @pytest.mark.parametrize("length", [2, 20, 200, 2000]) + def test_corr_for_constant_columns(self, length): + # GH: 37448 + df = DataFrame(length * [[0.4, 0.1]], columns=["A", "B"]) + result = df.corr() + expected = DataFrame( + {"A": [np.nan, np.nan], "B": [np.nan, np.nan]}, index=["A", "B"] + ) + tm.assert_frame_equal(result, expected) + + def test_calc_corr_small_numbers(self): + # GH: 37452 + df = DataFrame( + {"A": [1.0e-20, 2.0e-20, 3.0e-20], "B": [1.0e-20, 2.0e-20, 3.0e-20]} + ) + result = df.corr() + expected = DataFrame({"A": [1.0, 1.0], "B": [1.0, 1.0]}, index=["A", "B"]) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("method", ["pearson", "spearman", "kendall"]) + def test_corr_min_periods_greater_than_length(self, method): + pytest.importorskip("scipy") + df = DataFrame({"A": [1, 2], "B": [1, 2]}) + result = df.corr(method=method, min_periods=3) + expected = DataFrame( + {"A": [np.nan, np.nan], "B": [np.nan, np.nan]}, index=["A", "B"] + ) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("meth", ["pearson", "kendall", "spearman"]) + @pytest.mark.parametrize("numeric_only", [True, False]) + def test_corr_numeric_only(self, meth, numeric_only): + # when dtypes of pandas series are different + # then ndarray will have dtype=object, + # so it need to be properly handled + pytest.importorskip("scipy") + df = DataFrame({"a": [1, 0], "b": [1, 0], "c": ["x", "y"]}) + expected = DataFrame(np.ones((2, 2)), index=["a", "b"], columns=["a", "b"]) + if numeric_only: + result = df.corr(meth, numeric_only=numeric_only) + tm.assert_frame_equal(result, expected) + else: + with pytest.raises(ValueError, match="could not convert string to float"): + df.corr(meth, numeric_only=numeric_only) + + +class TestDataFrameCorrWith: + @pytest.mark.parametrize( + "dtype", + [ + "float64", + "Float64", + pytest.param("float64[pyarrow]", marks=td.skip_if_no("pyarrow")), + ], + ) + def test_corrwith(self, datetime_frame, dtype): + datetime_frame = datetime_frame.astype(dtype) + + a = datetime_frame + noise = Series(np.random.default_rng(2).standard_normal(len(a)), index=a.index) + + b = datetime_frame.add(noise, axis=0) + + # make sure order does not matter + b = b.reindex(columns=b.columns[::-1], index=b.index[::-1][10:]) + del b["B"] + + colcorr = a.corrwith(b, axis=0) + tm.assert_almost_equal(colcorr["A"], a["A"].corr(b["A"])) + + rowcorr = a.corrwith(b, axis=1) + tm.assert_series_equal(rowcorr, a.T.corrwith(b.T, axis=0)) + + dropped = a.corrwith(b, axis=0, drop=True) + tm.assert_almost_equal(dropped["A"], a["A"].corr(b["A"])) + assert "B" not in dropped + + dropped = a.corrwith(b, axis=1, drop=True) + assert a.index[-1] not in dropped.index + + # non time-series data + index = ["a", "b", "c", "d", "e"] + columns = ["one", "two", "three", "four"] + df1 = DataFrame( + np.random.default_rng(2).standard_normal((5, 4)), + index=index, + columns=columns, + ) + df2 = DataFrame( + np.random.default_rng(2).standard_normal((4, 4)), + index=index[:4], + columns=columns, + ) + correls = df1.corrwith(df2, axis=1) + for row in index[:4]: + tm.assert_almost_equal(correls[row], df1.loc[row].corr(df2.loc[row])) + + def test_corrwith_with_objects(self, using_infer_string): + df1 = DataFrame( + np.random.default_rng(2).standard_normal((10, 4)), + columns=Index(list("ABCD"), dtype=object), + index=date_range("2000-01-01", periods=10, freq="B"), + ) + df2 = df1.copy() + cols = ["A", "B", "C", "D"] + + df1["obj"] = "foo" + df2["obj"] = "bar" + + if using_infer_string: + msg = "Cannot perform reduction 'mean' with string dtype" + with pytest.raises(TypeError, match=msg): + df1.corrwith(df2) + else: + with pytest.raises(TypeError, match="Could not convert"): + df1.corrwith(df2) + result = df1.corrwith(df2, numeric_only=True) + expected = df1.loc[:, cols].corrwith(df2.loc[:, cols]) + tm.assert_series_equal(result, expected) + + with pytest.raises(TypeError, match="unsupported operand type"): + df1.corrwith(df2, axis=1) + result = df1.corrwith(df2, axis=1, numeric_only=True) + expected = df1.loc[:, cols].corrwith(df2.loc[:, cols], axis=1) + tm.assert_series_equal(result, expected) + + def test_corrwith_series(self, datetime_frame): + result = datetime_frame.corrwith(datetime_frame["A"]) + expected = datetime_frame.apply(datetime_frame["A"].corr) + + tm.assert_series_equal(result, expected) + + def test_corrwith_matches_corrcoef(self): + df1 = DataFrame(np.arange(10000), columns=["a"]) + df2 = DataFrame(np.arange(10000) ** 2, columns=["a"]) + c1 = df1.corrwith(df2)["a"] + c2 = np.corrcoef(df1["a"], df2["a"])[0][1] + + tm.assert_almost_equal(c1, c2) + assert c1 < 1 + + @pytest.mark.parametrize("numeric_only", [True, False]) + def test_corrwith_mixed_dtypes(self, numeric_only): + # GH#18570 + df = DataFrame( + {"a": [1, 4, 3, 2], "b": [4, 6, 7, 3], "c": ["a", "b", "c", "d"]} + ) + s = Series([0, 6, 7, 3]) + if numeric_only: + result = df.corrwith(s, numeric_only=numeric_only) + corrs = [df["a"].corr(s), df["b"].corr(s)] + expected = Series(data=corrs, index=["a", "b"]) + tm.assert_series_equal(result, expected) + else: + with pytest.raises( + ValueError, + match="could not convert string to float", + ): + df.corrwith(s, numeric_only=numeric_only) + + def test_corrwith_index_intersection(self): + df1 = DataFrame( + np.random.default_rng(2).random(size=(10, 2)), columns=["a", "b"] + ) + df2 = DataFrame( + np.random.default_rng(2).random(size=(10, 3)), columns=["a", "b", "c"] + ) + + result = df1.corrwith(df2, drop=True).index.sort_values() + expected = df1.columns.intersection(df2.columns).sort_values() + tm.assert_index_equal(result, expected) + + def test_corrwith_index_union(self): + df1 = DataFrame( + np.random.default_rng(2).random(size=(10, 2)), columns=["a", "b"] + ) + df2 = DataFrame( + np.random.default_rng(2).random(size=(10, 3)), columns=["a", "b", "c"] + ) + + result = df1.corrwith(df2, drop=False).index.sort_values() + expected = df1.columns.union(df2.columns).sort_values() + tm.assert_index_equal(result, expected) + + def test_corrwith_dup_cols(self): + # GH#21925 + df1 = DataFrame(np.vstack([np.arange(10)] * 3).T) + df2 = df1.copy() + df2 = pd.concat((df2, df2[0]), axis=1) + + result = df1.corrwith(df2) + expected = Series(np.ones(4), index=[0, 0, 1, 2]) + tm.assert_series_equal(result, expected) + + def test_corr_numerical_instabilities(self): + # GH#45640 + df = DataFrame([[0.2, 0.4], [0.4, 0.2]]) + result = df.corr() + expected = DataFrame({0: [1.0, -1.0], 1: [-1.0, 1.0]}) + tm.assert_frame_equal(result - 1, expected - 1, atol=1e-17) + + def test_corrwith_spearman(self): + # GH#21925 + pytest.importorskip("scipy") + df = DataFrame(np.random.default_rng(2).random(size=(100, 3))) + result = df.corrwith(df**2, method="spearman") + expected = Series(np.ones(len(result))) + tm.assert_series_equal(result, expected) + + def test_corrwith_kendall(self): + # GH#21925 + pytest.importorskip("scipy") + df = DataFrame(np.random.default_rng(2).random(size=(100, 3))) + result = df.corrwith(df**2, method="kendall") + expected = Series(np.ones(len(result))) + tm.assert_series_equal(result, expected) + + def test_corrwith_spearman_with_tied_data(self): + # GH#48826 + pytest.importorskip("scipy") + df1 = DataFrame( + { + "A": [1, np.nan, 7, 8], + "B": [False, True, True, False], + "C": [10, 4, 9, 3], + } + ) + df2 = df1[["B", "C"]] + result = (df1 + 1).corrwith(df2.B, method="spearman") + expected = Series([0.0, 1.0, 0.0], index=["A", "B", "C"]) + tm.assert_series_equal(result, expected) + + df_bool = DataFrame( + {"A": [True, True, False, False], "B": [True, False, False, True]} + ) + ser_bool = Series([True, True, False, True]) + result = df_bool.corrwith(ser_bool) + expected = Series([0.57735, 0.57735], index=["A", "B"]) + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_describe.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_describe.py new file mode 100644 index 0000000000000000000000000000000000000000..5beb09940acf32a4a597819f5b130863d90261e5 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_describe.py @@ -0,0 +1,417 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + Categorical, + DataFrame, + Series, + Timestamp, + date_range, +) +import pandas._testing as tm + + +class TestDataFrameDescribe: + def test_describe_bool_in_mixed_frame(self): + df = DataFrame( + { + "string_data": ["a", "b", "c", "d", "e"], + "bool_data": [True, True, False, False, False], + "int_data": [10, 20, 30, 40, 50], + } + ) + + # Integer data are included in .describe() output, + # Boolean and string data are not. + result = df.describe() + expected = DataFrame( + {"int_data": [5, 30, df.int_data.std(), 10, 20, 30, 40, 50]}, + index=["count", "mean", "std", "min", "25%", "50%", "75%", "max"], + ) + tm.assert_frame_equal(result, expected) + + # Top value is a boolean value that is False + result = df.describe(include=["bool"]) + + expected = DataFrame( + {"bool_data": [5, 2, False, 3]}, index=["count", "unique", "top", "freq"] + ) + tm.assert_frame_equal(result, expected) + + def test_describe_empty_object(self): + # GH#27183 + df = DataFrame({"A": [None, None]}, dtype=object) + result = df.describe() + expected = DataFrame( + {"A": [0, 0, np.nan, np.nan]}, + dtype=object, + index=["count", "unique", "top", "freq"], + ) + tm.assert_frame_equal(result, expected) + + result = df.iloc[:0].describe() + tm.assert_frame_equal(result, expected) + + def test_describe_bool_frame(self): + # GH#13891 + df = DataFrame( + { + "bool_data_1": [False, False, True, True], + "bool_data_2": [False, True, True, True], + } + ) + result = df.describe() + expected = DataFrame( + {"bool_data_1": [4, 2, False, 2], "bool_data_2": [4, 2, True, 3]}, + index=["count", "unique", "top", "freq"], + ) + tm.assert_frame_equal(result, expected) + + df = DataFrame( + { + "bool_data": [False, False, True, True, False], + "int_data": [0, 1, 2, 3, 4], + } + ) + result = df.describe() + expected = DataFrame( + {"int_data": [5, 2, df.int_data.std(), 0, 1, 2, 3, 4]}, + index=["count", "mean", "std", "min", "25%", "50%", "75%", "max"], + ) + tm.assert_frame_equal(result, expected) + + df = DataFrame( + {"bool_data": [False, False, True, True], "str_data": ["a", "b", "c", "a"]} + ) + result = df.describe() + expected = DataFrame( + {"bool_data": [4, 2, False, 2], "str_data": [4, 3, "a", 2]}, + index=["count", "unique", "top", "freq"], + ) + tm.assert_frame_equal(result, expected) + + def test_describe_categorical(self): + df = DataFrame({"value": np.random.default_rng(2).integers(0, 10000, 100)}) + labels = [f"{i} - {i + 499}" for i in range(0, 10000, 500)] + cat_labels = Categorical(labels, labels) + + df = df.sort_values(by=["value"], ascending=True) + df["value_group"] = pd.cut( + df.value, range(0, 10500, 500), right=False, labels=cat_labels + ) + cat = df + + # Categoricals should not show up together with numerical columns + result = cat.describe() + assert len(result.columns) == 1 + + # In a frame, describe() for the cat should be the same as for string + # arrays (count, unique, top, freq) + + cat = Categorical( + ["a", "b", "b", "b"], categories=["a", "b", "c"], ordered=True + ) + s = Series(cat) + result = s.describe() + expected = Series([4, 2, "b", 3], index=["count", "unique", "top", "freq"]) + tm.assert_series_equal(result, expected) + + cat = Series(Categorical(["a", "b", "c", "c"])) + df3 = DataFrame({"cat": cat, "s": ["a", "b", "c", "c"]}) + result = df3.describe() + tm.assert_numpy_array_equal(result["cat"].values, result["s"].values) + + def test_describe_empty_categorical_column(self): + # GH#26397 + # Ensure the index of an empty categorical DataFrame column + # also contains (count, unique, top, freq) + df = DataFrame({"empty_col": Categorical([])}) + result = df.describe() + expected = DataFrame( + {"empty_col": [0, 0, np.nan, np.nan]}, + index=["count", "unique", "top", "freq"], + dtype="object", + ) + tm.assert_frame_equal(result, expected) + # ensure NaN, not None + assert np.isnan(result.iloc[2, 0]) + assert np.isnan(result.iloc[3, 0]) + + def test_describe_categorical_columns(self): + # GH#11558 + columns = pd.CategoricalIndex(["int1", "int2", "obj"], ordered=True, name="XXX") + df = DataFrame( + { + "int1": [10, 20, 30, 40, 50], + "int2": [10, 20, 30, 40, 50], + "obj": ["A", 0, None, "X", 1], + }, + columns=columns, + ) + result = df.describe() + + exp_columns = pd.CategoricalIndex( + ["int1", "int2"], + categories=["int1", "int2", "obj"], + ordered=True, + name="XXX", + ) + expected = DataFrame( + { + "int1": [5, 30, df.int1.std(), 10, 20, 30, 40, 50], + "int2": [5, 30, df.int2.std(), 10, 20, 30, 40, 50], + }, + index=["count", "mean", "std", "min", "25%", "50%", "75%", "max"], + columns=exp_columns, + ) + + tm.assert_frame_equal(result, expected) + tm.assert_categorical_equal(result.columns.values, expected.columns.values) + + def test_describe_datetime_columns(self): + columns = pd.DatetimeIndex( + ["2011-01-01", "2011-02-01", "2011-03-01"], + freq="MS", + tz="US/Eastern", + name="XXX", + ) + df = DataFrame( + { + 0: [10, 20, 30, 40, 50], + 1: [10, 20, 30, 40, 50], + 2: ["A", 0, None, "X", 1], + } + ) + df.columns = columns + result = df.describe() + + exp_columns = pd.DatetimeIndex( + ["2011-01-01", "2011-02-01"], freq="MS", tz="US/Eastern", name="XXX" + ) + expected = DataFrame( + { + 0: [5, 30, df.iloc[:, 0].std(), 10, 20, 30, 40, 50], + 1: [5, 30, df.iloc[:, 1].std(), 10, 20, 30, 40, 50], + }, + index=["count", "mean", "std", "min", "25%", "50%", "75%", "max"], + ) + expected.columns = exp_columns + tm.assert_frame_equal(result, expected) + assert result.columns.freq == "MS" + assert result.columns.tz == expected.columns.tz + + def test_describe_timedelta_values(self): + # GH#6145 + t1 = pd.timedelta_range("1 days", freq="D", periods=5) + t2 = pd.timedelta_range("1 hours", freq="h", periods=5) + df = DataFrame({"t1": t1, "t2": t2}) + + expected = DataFrame( + { + "t1": [ + 5, + pd.Timedelta("3 days"), + df.iloc[:, 0].std(), + pd.Timedelta("1 days"), + pd.Timedelta("2 days"), + pd.Timedelta("3 days"), + pd.Timedelta("4 days"), + pd.Timedelta("5 days"), + ], + "t2": [ + 5, + pd.Timedelta("3 hours"), + df.iloc[:, 1].std(), + pd.Timedelta("1 hours"), + pd.Timedelta("2 hours"), + pd.Timedelta("3 hours"), + pd.Timedelta("4 hours"), + pd.Timedelta("5 hours"), + ], + }, + index=["count", "mean", "std", "min", "25%", "50%", "75%", "max"], + ) + + result = df.describe() + tm.assert_frame_equal(result, expected) + + exp_repr = ( + " t1 t2\n" + "count 5 5\n" + "mean 3 days 00:00:00 0 days 03:00:00\n" + "std 1 days 13:56:50.394919273 0 days 01:34:52.099788303\n" + "min 1 days 00:00:00 0 days 01:00:00\n" + "25% 2 days 00:00:00 0 days 02:00:00\n" + "50% 3 days 00:00:00 0 days 03:00:00\n" + "75% 4 days 00:00:00 0 days 04:00:00\n" + "max 5 days 00:00:00 0 days 05:00:00" + ) + assert repr(result) == exp_repr + + def test_describe_tz_values(self, tz_naive_fixture): + # GH#21332 + tz = tz_naive_fixture + s1 = Series(range(5)) + start = Timestamp(2018, 1, 1) + end = Timestamp(2018, 1, 5) + s2 = Series(date_range(start, end, tz=tz)) + df = DataFrame({"s1": s1, "s2": s2}) + + expected = DataFrame( + { + "s1": [5, 2, 0, 1, 2, 3, 4, 1.581139], + "s2": [ + 5, + Timestamp(2018, 1, 3).tz_localize(tz), + start.tz_localize(tz), + s2[1], + s2[2], + s2[3], + end.tz_localize(tz), + np.nan, + ], + }, + index=["count", "mean", "min", "25%", "50%", "75%", "max", "std"], + ) + result = df.describe(include="all") + tm.assert_frame_equal(result, expected) + + def test_datetime_is_numeric_includes_datetime(self): + df = DataFrame({"a": date_range("2012", periods=3), "b": [1, 2, 3]}) + result = df.describe() + expected = DataFrame( + { + "a": [ + 3, + Timestamp("2012-01-02"), + Timestamp("2012-01-01"), + Timestamp("2012-01-01T12:00:00"), + Timestamp("2012-01-02"), + Timestamp("2012-01-02T12:00:00"), + Timestamp("2012-01-03"), + np.nan, + ], + "b": [3, 2, 1, 1.5, 2, 2.5, 3, 1], + }, + index=["count", "mean", "min", "25%", "50%", "75%", "max", "std"], + ) + tm.assert_frame_equal(result, expected) + + def test_describe_tz_values2(self): + tz = "CET" + s1 = Series(range(5)) + start = Timestamp(2018, 1, 1) + end = Timestamp(2018, 1, 5) + s2 = Series(date_range(start, end, tz=tz)) + df = DataFrame({"s1": s1, "s2": s2}) + + s1_ = s1.describe() + s2_ = s2.describe() + idx = [ + "count", + "mean", + "min", + "25%", + "50%", + "75%", + "max", + "std", + ] + expected = pd.concat([s1_, s2_], axis=1, keys=["s1", "s2"]).reindex( + idx, copy=False + ) + + result = df.describe(include="all") + tm.assert_frame_equal(result, expected) + + def test_describe_percentiles_integer_idx(self): + # GH#26660 + df = DataFrame({"x": [1]}) + pct = np.linspace(0, 1, 10 + 1) + result = df.describe(percentiles=pct) + + expected = DataFrame( + {"x": [1.0, 1.0, np.nan, 1.0, *(1.0 for _ in pct), 1.0]}, + index=[ + "count", + "mean", + "std", + "min", + "0%", + "10%", + "20%", + "30%", + "40%", + "50%", + "60%", + "70%", + "80%", + "90%", + "100%", + "max", + ], + ) + tm.assert_frame_equal(result, expected) + + def test_describe_does_not_raise_error_for_dictlike_elements(self): + # GH#32409 + df = DataFrame([{"test": {"a": "1"}}, {"test": {"a": "2"}}]) + expected = DataFrame( + {"test": [2, 2, {"a": "1"}, 1]}, index=["count", "unique", "top", "freq"] + ) + result = df.describe() + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("exclude", ["x", "y", ["x", "y"], ["x", "z"]]) + def test_describe_when_include_all_exclude_not_allowed(self, exclude): + """ + When include is 'all', then setting exclude != None is not allowed. + """ + df = DataFrame({"x": [1], "y": [2], "z": [3]}) + msg = "exclude must be None when include is 'all'" + with pytest.raises(ValueError, match=msg): + df.describe(include="all", exclude=exclude) + + def test_describe_with_duplicate_columns(self): + df = DataFrame( + [[1, 1, 1], [2, 2, 2], [3, 3, 3]], + columns=["bar", "a", "a"], + dtype="float64", + ) + result = df.describe() + ser = df.iloc[:, 0].describe() + expected = pd.concat([ser, ser, ser], keys=df.columns, axis=1) + tm.assert_frame_equal(result, expected) + + def test_ea_with_na(self, any_numeric_ea_dtype): + # GH#48778 + + df = DataFrame({"a": [1, pd.NA, pd.NA], "b": pd.NA}, dtype=any_numeric_ea_dtype) + result = df.describe() + expected = DataFrame( + {"a": [1.0, 1.0, pd.NA] + [1.0] * 5, "b": [0.0] + [pd.NA] * 7}, + index=["count", "mean", "std", "min", "25%", "50%", "75%", "max"], + dtype="Float64", + ) + tm.assert_frame_equal(result, expected) + + def test_describe_exclude_pa_dtype(self): + # GH#52570 + pa = pytest.importorskip("pyarrow") + df = DataFrame( + { + "a": Series([1, 2, 3], dtype=pd.ArrowDtype(pa.int8())), + "b": Series([1, 2, 3], dtype=pd.ArrowDtype(pa.int16())), + "c": Series([1, 2, 3], dtype=pd.ArrowDtype(pa.int32())), + } + ) + result = df.describe( + include=pd.ArrowDtype(pa.int8()), exclude=pd.ArrowDtype(pa.int32()) + ) + expected = DataFrame( + {"a": [3, 2, 1, 1, 1.5, 2, 2.5, 3]}, + index=["count", "mean", "std", "min", "25%", "50%", "75%", "max"], + dtype=pd.ArrowDtype(pa.float64()), + ) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_diff.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_diff.py new file mode 100644 index 0000000000000000000000000000000000000000..bef18dbaf8a8a914eae683c16f4e71cc90514c39 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_diff.py @@ -0,0 +1,308 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + DataFrame, + Series, + Timestamp, + date_range, +) +import pandas._testing as tm + + +class TestDataFrameDiff: + def test_diff_requires_integer(self): + df = DataFrame(np.random.default_rng(2).standard_normal((2, 2))) + with pytest.raises(ValueError, match="periods must be an integer"): + df.diff(1.5) + + # GH#44572 np.int64 is accepted + @pytest.mark.parametrize("num", [1, np.int64(1)]) + def test_diff(self, datetime_frame, num): + df = datetime_frame + the_diff = df.diff(num) + + expected = df["A"] - df["A"].shift(num) + tm.assert_series_equal(the_diff["A"], expected) + + def test_diff_int_dtype(self): + # int dtype + a = 10_000_000_000_000_000 + b = a + 1 + ser = Series([a, b]) + + rs = DataFrame({"s": ser}).diff() + assert rs.s[1] == 1 + + def test_diff_mixed_numeric(self, datetime_frame): + # mixed numeric + tf = datetime_frame.astype("float32") + the_diff = tf.diff(1) + tm.assert_series_equal(the_diff["A"], tf["A"] - tf["A"].shift(1)) + + def test_diff_axis1_nonconsolidated(self): + # GH#10907 + df = DataFrame({"y": Series([2]), "z": Series([3])}) + df.insert(0, "x", 1) + result = df.diff(axis=1) + expected = DataFrame({"x": np.nan, "y": Series(1), "z": Series(1)}) + tm.assert_frame_equal(result, expected) + + def test_diff_timedelta64_with_nat(self): + # GH#32441 + arr = np.arange(6).reshape(3, 2).astype("timedelta64[ns]") + arr[:, 0] = np.timedelta64("NaT", "ns") + + df = DataFrame(arr) + result = df.diff(1, axis=0) + + expected = DataFrame({0: df[0], 1: [pd.NaT, pd.Timedelta(2), pd.Timedelta(2)]}) + tm.assert_equal(result, expected) + + result = df.diff(0) + expected = df - df + assert expected[0].isna().all() + tm.assert_equal(result, expected) + + result = df.diff(-1, axis=1) + expected = df * np.nan + tm.assert_equal(result, expected) + + @pytest.mark.parametrize("tz", [None, "UTC"]) + def test_diff_datetime_axis0_with_nat(self, tz, unit): + # GH#32441 + dti = pd.DatetimeIndex(["NaT", "2019-01-01", "2019-01-02"], tz=tz).as_unit(unit) + ser = Series(dti) + + df = ser.to_frame() + + result = df.diff() + ex_index = pd.TimedeltaIndex([pd.NaT, pd.NaT, pd.Timedelta(days=1)]).as_unit( + unit + ) + expected = Series(ex_index).to_frame() + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("tz", [None, "UTC"]) + def test_diff_datetime_with_nat_zero_periods(self, tz): + # diff on NaT values should give NaT, not timedelta64(0) + dti = date_range("2016-01-01", periods=4, tz=tz) + ser = Series(dti) + df = ser.to_frame().copy() + + df[1] = ser.copy() + + df.iloc[:, 0] = pd.NaT + + expected = df - df + assert expected[0].isna().all() + + result = df.diff(0, axis=0) + tm.assert_frame_equal(result, expected) + + result = df.diff(0, axis=1) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("tz", [None, "UTC"]) + def test_diff_datetime_axis0(self, tz): + # GH#18578 + df = DataFrame( + { + 0: date_range("2010", freq="D", periods=2, tz=tz), + 1: date_range("2010", freq="D", periods=2, tz=tz), + } + ) + + result = df.diff(axis=0) + expected = DataFrame( + { + 0: pd.TimedeltaIndex(["NaT", "1 days"]), + 1: pd.TimedeltaIndex(["NaT", "1 days"]), + } + ) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("tz", [None, "UTC"]) + def test_diff_datetime_axis1(self, tz): + # GH#18578 + df = DataFrame( + { + 0: date_range("2010", freq="D", periods=2, tz=tz), + 1: date_range("2010", freq="D", periods=2, tz=tz), + } + ) + + result = df.diff(axis=1) + expected = DataFrame( + { + 0: pd.TimedeltaIndex(["NaT", "NaT"]), + 1: pd.TimedeltaIndex(["0 days", "0 days"]), + } + ) + tm.assert_frame_equal(result, expected) + + def test_diff_timedelta(self, unit): + # GH#4533 + df = DataFrame( + { + "time": [Timestamp("20130101 9:01"), Timestamp("20130101 9:02")], + "value": [1.0, 2.0], + } + ) + df["time"] = df["time"].dt.as_unit(unit) + + res = df.diff() + exp = DataFrame( + [[pd.NaT, np.nan], [pd.Timedelta("00:01:00"), 1]], columns=["time", "value"] + ) + exp["time"] = exp["time"].dt.as_unit(unit) + tm.assert_frame_equal(res, exp) + + def test_diff_mixed_dtype(self): + df = DataFrame(np.random.default_rng(2).standard_normal((5, 3))) + df["A"] = np.array([1, 2, 3, 4, 5], dtype=object) + + result = df.diff() + assert result[0].dtype == np.float64 + + def test_diff_neg_n(self, datetime_frame): + rs = datetime_frame.diff(-1) + xp = datetime_frame - datetime_frame.shift(-1) + tm.assert_frame_equal(rs, xp) + + def test_diff_float_n(self, datetime_frame): + rs = datetime_frame.diff(1.0) + xp = datetime_frame.diff(1) + tm.assert_frame_equal(rs, xp) + + def test_diff_axis(self): + # GH#9727 + df = DataFrame([[1.0, 2.0], [3.0, 4.0]]) + tm.assert_frame_equal( + df.diff(axis=1), DataFrame([[np.nan, 1.0], [np.nan, 1.0]]) + ) + tm.assert_frame_equal( + df.diff(axis=0), DataFrame([[np.nan, np.nan], [2.0, 2.0]]) + ) + + def test_diff_period(self): + # GH#32995 Don't pass an incorrect axis + pi = date_range("2016-01-01", periods=3).to_period("D") + df = DataFrame({"A": pi}) + + result = df.diff(1, axis=1) + + expected = (df - pd.NaT).astype(object) + tm.assert_frame_equal(result, expected) + + def test_diff_axis1_mixed_dtypes(self): + # GH#32995 operate column-wise when we have mixed dtypes and axis=1 + df = DataFrame({"A": range(3), "B": 2 * np.arange(3, dtype=np.float64)}) + + expected = DataFrame({"A": [np.nan, np.nan, np.nan], "B": df["B"] / 2}) + + result = df.diff(axis=1) + tm.assert_frame_equal(result, expected) + + # GH#21437 mixed-float-dtypes + df = DataFrame( + {"a": np.arange(3, dtype="float32"), "b": np.arange(3, dtype="float64")} + ) + result = df.diff(axis=1) + expected = DataFrame({"a": df["a"] * np.nan, "b": df["b"] * 0}) + tm.assert_frame_equal(result, expected) + + def test_diff_axis1_mixed_dtypes_large_periods(self): + # GH#32995 operate column-wise when we have mixed dtypes and axis=1 + df = DataFrame({"A": range(3), "B": 2 * np.arange(3, dtype=np.float64)}) + + expected = df * np.nan + + result = df.diff(axis=1, periods=3) + tm.assert_frame_equal(result, expected) + + def test_diff_axis1_mixed_dtypes_negative_periods(self): + # GH#32995 operate column-wise when we have mixed dtypes and axis=1 + df = DataFrame({"A": range(3), "B": 2 * np.arange(3, dtype=np.float64)}) + + expected = DataFrame({"A": -1.0 * df["A"], "B": df["B"] * np.nan}) + + result = df.diff(axis=1, periods=-1) + tm.assert_frame_equal(result, expected) + + def test_diff_sparse(self): + # GH#28813 .diff() should work for sparse dataframes as well + sparse_df = DataFrame([[0, 1], [1, 0]], dtype="Sparse[int]") + + result = sparse_df.diff() + expected = DataFrame( + [[np.nan, np.nan], [1.0, -1.0]], dtype=pd.SparseDtype("float", 0.0) + ) + + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "axis,expected", + [ + ( + 0, + DataFrame( + { + "a": [np.nan, 0, 1, 0, np.nan, np.nan, np.nan, 0], + "b": [np.nan, 1, np.nan, np.nan, -2, 1, np.nan, np.nan], + "c": np.repeat(np.nan, 8), + "d": [np.nan, 3, 5, 7, 9, 11, 13, 15], + }, + dtype="Int64", + ), + ), + ( + 1, + DataFrame( + { + "a": np.repeat(np.nan, 8), + "b": [0, 1, np.nan, 1, np.nan, np.nan, np.nan, 0], + "c": np.repeat(np.nan, 8), + "d": np.repeat(np.nan, 8), + }, + dtype="Int64", + ), + ), + ], + ) + def test_diff_integer_na(self, axis, expected): + # GH#24171 IntegerNA Support for DataFrame.diff() + df = DataFrame( + { + "a": np.repeat([0, 1, np.nan, 2], 2), + "b": np.tile([0, 1, np.nan, 2], 2), + "c": np.repeat(np.nan, 8), + "d": np.arange(1, 9) ** 2, + }, + dtype="Int64", + ) + + # Test case for default behaviour of diff + result = df.diff(axis=axis) + tm.assert_frame_equal(result, expected) + + def test_diff_readonly(self): + # https://github.com/pandas-dev/pandas/issues/35559 + arr = np.random.default_rng(2).standard_normal((5, 2)) + arr.flags.writeable = False + df = DataFrame(arr) + result = df.diff() + expected = DataFrame(np.array(df)).diff() + tm.assert_frame_equal(result, expected) + + def test_diff_all_int_dtype(self, any_int_numpy_dtype): + # GH 14773 + df = DataFrame(range(5)) + df = df.astype(any_int_numpy_dtype) + result = df.diff() + expected_dtype = ( + "float32" if any_int_numpy_dtype in ("int8", "int16") else "float64" + ) + expected = DataFrame([np.nan, 1.0, 1.0, 1.0, 1.0], dtype=expected_dtype) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_dot.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_dot.py new file mode 100644 index 0000000000000000000000000000000000000000..3e01f67c8794bcf35d2b7be57f8bedcc06c2a137 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_dot.py @@ -0,0 +1,155 @@ +import numpy as np +import pytest + +from pandas import ( + DataFrame, + Series, +) +import pandas._testing as tm + + +class DotSharedTests: + @pytest.fixture + def obj(self): + raise NotImplementedError + + @pytest.fixture + def other(self) -> DataFrame: + """ + other is a DataFrame that is indexed so that obj.dot(other) is valid + """ + raise NotImplementedError + + @pytest.fixture + def expected(self, obj, other) -> DataFrame: + """ + The expected result of obj.dot(other) + """ + raise NotImplementedError + + @classmethod + def reduced_dim_assert(cls, result, expected): + """ + Assertion about results with 1 fewer dimension that self.obj + """ + raise NotImplementedError + + def test_dot_equiv_values_dot(self, obj, other, expected): + # `expected` is constructed from obj.values.dot(other.values) + result = obj.dot(other) + tm.assert_equal(result, expected) + + def test_dot_2d_ndarray(self, obj, other, expected): + # Check ndarray argument; in this case we get matching values, + # but index/columns may not match + result = obj.dot(other.values) + assert np.all(result == expected.values) + + def test_dot_1d_ndarray(self, obj, expected): + # can pass correct-length array + row = obj.iloc[0] if obj.ndim == 2 else obj + + result = obj.dot(row.values) + expected = obj.dot(row) + self.reduced_dim_assert(result, expected) + + def test_dot_series(self, obj, other, expected): + # Check series argument + result = obj.dot(other["1"]) + self.reduced_dim_assert(result, expected["1"]) + + def test_dot_series_alignment(self, obj, other, expected): + result = obj.dot(other.iloc[::-1]["1"]) + self.reduced_dim_assert(result, expected["1"]) + + def test_dot_aligns(self, obj, other, expected): + # Check index alignment + other2 = other.iloc[::-1] + result = obj.dot(other2) + tm.assert_equal(result, expected) + + def test_dot_shape_mismatch(self, obj): + msg = "Dot product shape mismatch" + # exception raised is of type Exception + with pytest.raises(Exception, match=msg): + obj.dot(obj.values[:3]) + + def test_dot_misaligned(self, obj, other): + msg = "matrices are not aligned" + with pytest.raises(ValueError, match=msg): + obj.dot(other.T) + + +class TestSeriesDot(DotSharedTests): + @pytest.fixture + def obj(self): + return Series( + np.random.default_rng(2).standard_normal(4), index=["p", "q", "r", "s"] + ) + + @pytest.fixture + def other(self): + return DataFrame( + np.random.default_rng(2).standard_normal((3, 4)), + index=["1", "2", "3"], + columns=["p", "q", "r", "s"], + ).T + + @pytest.fixture + def expected(self, obj, other): + return Series(np.dot(obj.values, other.values), index=other.columns) + + @classmethod + def reduced_dim_assert(cls, result, expected): + """ + Assertion about results with 1 fewer dimension that self.obj + """ + tm.assert_almost_equal(result, expected) + + +class TestDataFrameDot(DotSharedTests): + @pytest.fixture + def obj(self): + return DataFrame( + np.random.default_rng(2).standard_normal((3, 4)), + index=["a", "b", "c"], + columns=["p", "q", "r", "s"], + ) + + @pytest.fixture + def other(self): + return DataFrame( + np.random.default_rng(2).standard_normal((4, 2)), + index=["p", "q", "r", "s"], + columns=["1", "2"], + ) + + @pytest.fixture + def expected(self, obj, other): + return DataFrame( + np.dot(obj.values, other.values), index=obj.index, columns=other.columns + ) + + @classmethod + def reduced_dim_assert(cls, result, expected): + """ + Assertion about results with 1 fewer dimension that self.obj + """ + tm.assert_series_equal(result, expected, check_names=False) + assert result.name is None + + +@pytest.mark.parametrize( + "dtype,exp_dtype", + [("Float32", "Float64"), ("Int16", "Int32"), ("float[pyarrow]", "double[pyarrow]")], +) +def test_arrow_dtype(dtype, exp_dtype): + pytest.importorskip("pyarrow") + + cols = ["a", "b"] + df_a = DataFrame([[1, 2], [3, 4], [5, 6]], columns=cols, dtype="int32") + df_b = DataFrame([[1, 0], [0, 1]], index=cols, dtype=dtype) + result = df_a.dot(df_b) + expected = DataFrame([[1, 2], [3, 4], [5, 6]], dtype=exp_dtype) + + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_drop.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_drop.py new file mode 100644 index 0000000000000000000000000000000000000000..06cd51b43a0aa038868d533d4e664db6681bc801 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_drop.py @@ -0,0 +1,546 @@ +import re + +import numpy as np +import pytest + +from pandas.errors import PerformanceWarning + +import pandas as pd +from pandas import ( + DataFrame, + DatetimeIndex, + Index, + MultiIndex, + Series, + Timestamp, +) +import pandas._testing as tm + + +@pytest.mark.parametrize( + "msg,labels,level", + [ + (r"labels \[4\] not found in level", 4, "a"), + (r"labels \[7\] not found in level", 7, "b"), + ], +) +def test_drop_raise_exception_if_labels_not_in_level(msg, labels, level): + # GH 8594 + mi = MultiIndex.from_arrays([[1, 2, 3], [4, 5, 6]], names=["a", "b"]) + s = Series([10, 20, 30], index=mi) + df = DataFrame([10, 20, 30], index=mi) + + with pytest.raises(KeyError, match=msg): + s.drop(labels, level=level) + with pytest.raises(KeyError, match=msg): + df.drop(labels, level=level) + + +@pytest.mark.parametrize("labels,level", [(4, "a"), (7, "b")]) +def test_drop_errors_ignore(labels, level): + # GH 8594 + mi = MultiIndex.from_arrays([[1, 2, 3], [4, 5, 6]], names=["a", "b"]) + s = Series([10, 20, 30], index=mi) + df = DataFrame([10, 20, 30], index=mi) + + expected_s = s.drop(labels, level=level, errors="ignore") + tm.assert_series_equal(s, expected_s) + + expected_df = df.drop(labels, level=level, errors="ignore") + tm.assert_frame_equal(df, expected_df) + + +def test_drop_with_non_unique_datetime_index_and_invalid_keys(): + # GH 30399 + + # define dataframe with unique datetime index + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 3)), + columns=["a", "b", "c"], + index=pd.date_range("2012", freq="h", periods=5), + ) + # create dataframe with non-unique datetime index + df = df.iloc[[0, 2, 2, 3]].copy() + + with pytest.raises(KeyError, match="not found in axis"): + df.drop(["a", "b"]) # Dropping with labels not exist in the index + + +class TestDataFrameDrop: + def test_drop_names(self): + df = DataFrame( + [[1, 2, 3], [3, 4, 5], [5, 6, 7]], + index=["a", "b", "c"], + columns=["d", "e", "f"], + ) + df.index.name, df.columns.name = "first", "second" + df_dropped_b = df.drop("b") + df_dropped_e = df.drop("e", axis=1) + df_inplace_b, df_inplace_e = df.copy(), df.copy() + return_value = df_inplace_b.drop("b", inplace=True) + assert return_value is None + return_value = df_inplace_e.drop("e", axis=1, inplace=True) + assert return_value is None + for obj in (df_dropped_b, df_dropped_e, df_inplace_b, df_inplace_e): + assert obj.index.name == "first" + assert obj.columns.name == "second" + assert list(df.columns) == ["d", "e", "f"] + + msg = r"\['g'\] not found in axis" + with pytest.raises(KeyError, match=msg): + df.drop(["g"]) + with pytest.raises(KeyError, match=msg): + df.drop(["g"], axis=1) + + # errors = 'ignore' + dropped = df.drop(["g"], errors="ignore") + expected = Index(["a", "b", "c"], name="first") + tm.assert_index_equal(dropped.index, expected) + + dropped = df.drop(["b", "g"], errors="ignore") + expected = Index(["a", "c"], name="first") + tm.assert_index_equal(dropped.index, expected) + + dropped = df.drop(["g"], axis=1, errors="ignore") + expected = Index(["d", "e", "f"], name="second") + tm.assert_index_equal(dropped.columns, expected) + + dropped = df.drop(["d", "g"], axis=1, errors="ignore") + expected = Index(["e", "f"], name="second") + tm.assert_index_equal(dropped.columns, expected) + + # GH 16398 + dropped = df.drop([], errors="ignore") + expected = Index(["a", "b", "c"], name="first") + tm.assert_index_equal(dropped.index, expected) + + def test_drop(self): + simple = DataFrame({"A": [1, 2, 3, 4], "B": [0, 1, 2, 3]}) + tm.assert_frame_equal(simple.drop("A", axis=1), simple[["B"]]) + tm.assert_frame_equal(simple.drop(["A", "B"], axis="columns"), simple[[]]) + tm.assert_frame_equal(simple.drop([0, 1, 3], axis=0), simple.loc[[2], :]) + tm.assert_frame_equal(simple.drop([0, 3], axis="index"), simple.loc[[1, 2], :]) + + with pytest.raises(KeyError, match=r"\[5\] not found in axis"): + simple.drop(5) + with pytest.raises(KeyError, match=r"\['C'\] not found in axis"): + simple.drop("C", axis=1) + with pytest.raises(KeyError, match=r"\[5\] not found in axis"): + simple.drop([1, 5]) + with pytest.raises(KeyError, match=r"\['C'\] not found in axis"): + simple.drop(["A", "C"], axis=1) + + # GH 42881 + with pytest.raises(KeyError, match=r"\['C', 'D', 'F'\] not found in axis"): + simple.drop(["C", "D", "F"], axis=1) + + # errors = 'ignore' + tm.assert_frame_equal(simple.drop(5, errors="ignore"), simple) + tm.assert_frame_equal( + simple.drop([0, 5], errors="ignore"), simple.loc[[1, 2, 3], :] + ) + tm.assert_frame_equal(simple.drop("C", axis=1, errors="ignore"), simple) + tm.assert_frame_equal( + simple.drop(["A", "C"], axis=1, errors="ignore"), simple[["B"]] + ) + + # non-unique - wheee! + nu_df = DataFrame( + list(zip(range(3), range(-3, 1), list("abc"))), columns=["a", "a", "b"] + ) + tm.assert_frame_equal(nu_df.drop("a", axis=1), nu_df[["b"]]) + tm.assert_frame_equal(nu_df.drop("b", axis="columns"), nu_df["a"]) + tm.assert_frame_equal(nu_df.drop([]), nu_df) # GH 16398 + + nu_df = nu_df.set_index(Index(["X", "Y", "X"])) + nu_df.columns = list("abc") + tm.assert_frame_equal(nu_df.drop("X", axis="rows"), nu_df.loc[["Y"], :]) + tm.assert_frame_equal(nu_df.drop(["X", "Y"], axis=0), nu_df.loc[[], :]) + + # inplace cache issue + # GH#5628 + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 3)), columns=list("abc") + ) + expected = df[~(df.b > 0)] + return_value = df.drop(labels=df[df.b > 0].index, inplace=True) + assert return_value is None + tm.assert_frame_equal(df, expected) + + def test_drop_multiindex_not_lexsorted(self): + # GH#11640 + + # define the lexsorted version + lexsorted_mi = MultiIndex.from_tuples( + [("a", ""), ("b1", "c1"), ("b2", "c2")], names=["b", "c"] + ) + lexsorted_df = DataFrame([[1, 3, 4]], columns=lexsorted_mi) + assert lexsorted_df.columns._is_lexsorted() + + # define the non-lexsorted version + not_lexsorted_df = DataFrame( + columns=["a", "b", "c", "d"], data=[[1, "b1", "c1", 3], [1, "b2", "c2", 4]] + ) + not_lexsorted_df = not_lexsorted_df.pivot_table( + index="a", columns=["b", "c"], values="d" + ) + not_lexsorted_df = not_lexsorted_df.reset_index() + assert not not_lexsorted_df.columns._is_lexsorted() + + expected = lexsorted_df.drop("a", axis=1).astype(float) + with tm.assert_produces_warning(PerformanceWarning): + result = not_lexsorted_df.drop("a", axis=1) + + tm.assert_frame_equal(result, expected) + + def test_drop_api_equivalence(self): + # equivalence of the labels/axis and index/columns API's (GH#12392) + df = DataFrame( + [[1, 2, 3], [3, 4, 5], [5, 6, 7]], + index=["a", "b", "c"], + columns=["d", "e", "f"], + ) + + res1 = df.drop("a") + res2 = df.drop(index="a") + tm.assert_frame_equal(res1, res2) + + res1 = df.drop("d", axis=1) + res2 = df.drop(columns="d") + tm.assert_frame_equal(res1, res2) + + res1 = df.drop(labels="e", axis=1) + res2 = df.drop(columns="e") + tm.assert_frame_equal(res1, res2) + + res1 = df.drop(["a"], axis=0) + res2 = df.drop(index=["a"]) + tm.assert_frame_equal(res1, res2) + + res1 = df.drop(["a"], axis=0).drop(["d"], axis=1) + res2 = df.drop(index=["a"], columns=["d"]) + tm.assert_frame_equal(res1, res2) + + msg = "Cannot specify both 'labels' and 'index'/'columns'" + with pytest.raises(ValueError, match=msg): + df.drop(labels="a", index="b") + + with pytest.raises(ValueError, match=msg): + df.drop(labels="a", columns="b") + + msg = "Need to specify at least one of 'labels', 'index' or 'columns'" + with pytest.raises(ValueError, match=msg): + df.drop(axis=1) + + data = [[1, 2, 3], [1, 2, 3]] + + @pytest.mark.parametrize( + "actual", + [ + DataFrame(data=data, index=["a", "a"]), + DataFrame(data=data, index=["a", "b"]), + DataFrame(data=data, index=["a", "b"]).set_index([0, 1]), + DataFrame(data=data, index=["a", "a"]).set_index([0, 1]), + ], + ) + def test_raise_on_drop_duplicate_index(self, actual): + # GH#19186 + level = 0 if isinstance(actual.index, MultiIndex) else None + msg = re.escape("\"['c'] not found in axis\"") + with pytest.raises(KeyError, match=msg): + actual.drop("c", level=level, axis=0) + with pytest.raises(KeyError, match=msg): + actual.T.drop("c", level=level, axis=1) + expected_no_err = actual.drop("c", axis=0, level=level, errors="ignore") + tm.assert_frame_equal(expected_no_err, actual) + expected_no_err = actual.T.drop("c", axis=1, level=level, errors="ignore") + tm.assert_frame_equal(expected_no_err.T, actual) + + @pytest.mark.parametrize("index", [[1, 2, 3], [1, 1, 2]]) + @pytest.mark.parametrize("drop_labels", [[], [1], [2]]) + def test_drop_empty_list(self, index, drop_labels): + # GH#21494 + expected_index = [i for i in index if i not in drop_labels] + frame = DataFrame(index=index).drop(drop_labels) + tm.assert_frame_equal(frame, DataFrame(index=expected_index)) + + @pytest.mark.parametrize("index", [[1, 2, 3], [1, 2, 2]]) + @pytest.mark.parametrize("drop_labels", [[1, 4], [4, 5]]) + def test_drop_non_empty_list(self, index, drop_labels): + # GH# 21494 + with pytest.raises(KeyError, match="not found in axis"): + DataFrame(index=index).drop(drop_labels) + + @pytest.mark.parametrize( + "empty_listlike", + [ + [], + {}, + np.array([]), + Series([], dtype="datetime64[ns]"), + Index([]), + DatetimeIndex([]), + ], + ) + def test_drop_empty_listlike_non_unique_datetime_index(self, empty_listlike): + # GH#27994 + data = {"column_a": [5, 10], "column_b": ["one", "two"]} + index = [Timestamp("2021-01-01"), Timestamp("2021-01-01")] + df = DataFrame(data, index=index) + + # Passing empty list-like should return the same DataFrame. + expected = df.copy() + result = df.drop(empty_listlike) + tm.assert_frame_equal(result, expected) + + def test_mixed_depth_drop(self): + arrays = [ + ["a", "top", "top", "routine1", "routine1", "routine2"], + ["", "OD", "OD", "result1", "result2", "result1"], + ["", "wx", "wy", "", "", ""], + ] + + tuples = sorted(zip(*arrays)) + index = MultiIndex.from_tuples(tuples) + df = DataFrame(np.random.default_rng(2).standard_normal((4, 6)), columns=index) + + result = df.drop("a", axis=1) + expected = df.drop([("a", "", "")], axis=1) + tm.assert_frame_equal(expected, result) + + result = df.drop(["top"], axis=1) + expected = df.drop([("top", "OD", "wx")], axis=1) + expected = expected.drop([("top", "OD", "wy")], axis=1) + tm.assert_frame_equal(expected, result) + + result = df.drop(("top", "OD", "wx"), axis=1) + expected = df.drop([("top", "OD", "wx")], axis=1) + tm.assert_frame_equal(expected, result) + + expected = df.drop([("top", "OD", "wy")], axis=1) + expected = df.drop("top", axis=1) + + result = df.drop("result1", level=1, axis=1) + expected = df.drop( + [("routine1", "result1", ""), ("routine2", "result1", "")], axis=1 + ) + tm.assert_frame_equal(expected, result) + + def test_drop_multiindex_other_level_nan(self): + # GH#12754 + df = ( + DataFrame( + { + "A": ["one", "one", "two", "two"], + "B": [np.nan, 0.0, 1.0, 2.0], + "C": ["a", "b", "c", "c"], + "D": [1, 2, 3, 4], + } + ) + .set_index(["A", "B", "C"]) + .sort_index() + ) + result = df.drop("c", level="C") + expected = DataFrame( + [2, 1], + columns=["D"], + index=MultiIndex.from_tuples( + [("one", 0.0, "b"), ("one", np.nan, "a")], names=["A", "B", "C"] + ), + ) + tm.assert_frame_equal(result, expected) + + def test_drop_nonunique(self): + df = DataFrame( + [ + ["x-a", "x", "a", 1.5], + ["x-a", "x", "a", 1.2], + ["z-c", "z", "c", 3.1], + ["x-a", "x", "a", 4.1], + ["x-b", "x", "b", 5.1], + ["x-b", "x", "b", 4.1], + ["x-b", "x", "b", 2.2], + ["y-a", "y", "a", 1.2], + ["z-b", "z", "b", 2.1], + ], + columns=["var1", "var2", "var3", "var4"], + ) + + grp_size = df.groupby("var1").size() + drop_idx = grp_size.loc[grp_size == 1] + + idf = df.set_index(["var1", "var2", "var3"]) + + # it works! GH#2101 + result = idf.drop(drop_idx.index, level=0).reset_index() + expected = df[-df.var1.isin(drop_idx.index)] + + result.index = expected.index + + tm.assert_frame_equal(result, expected) + + def test_drop_level(self, multiindex_dataframe_random_data): + frame = multiindex_dataframe_random_data + + result = frame.drop(["bar", "qux"], level="first") + expected = frame.iloc[[0, 1, 2, 5, 6]] + tm.assert_frame_equal(result, expected) + + result = frame.drop(["two"], level="second") + expected = frame.iloc[[0, 2, 3, 6, 7, 9]] + tm.assert_frame_equal(result, expected) + + result = frame.T.drop(["bar", "qux"], axis=1, level="first") + expected = frame.iloc[[0, 1, 2, 5, 6]].T + tm.assert_frame_equal(result, expected) + + result = frame.T.drop(["two"], axis=1, level="second") + expected = frame.iloc[[0, 2, 3, 6, 7, 9]].T + tm.assert_frame_equal(result, expected) + + def test_drop_level_nonunique_datetime(self): + # GH#12701 + idx = Index([2, 3, 4, 4, 5], name="id") + idxdt = pd.to_datetime( + [ + "2016-03-23 14:00", + "2016-03-23 15:00", + "2016-03-23 16:00", + "2016-03-23 16:00", + "2016-03-23 17:00", + ] + ) + df = DataFrame(np.arange(10).reshape(5, 2), columns=list("ab"), index=idx) + df["tstamp"] = idxdt + df = df.set_index("tstamp", append=True) + ts = Timestamp("201603231600") + assert df.index.is_unique is False + + result = df.drop(ts, level="tstamp") + expected = df.loc[idx != 4] + tm.assert_frame_equal(result, expected) + + def test_drop_tz_aware_timestamp_across_dst(self, frame_or_series): + # GH#21761 + start = Timestamp("2017-10-29", tz="Europe/Berlin") + end = Timestamp("2017-10-29 04:00:00", tz="Europe/Berlin") + index = pd.date_range(start, end, freq="15min") + data = frame_or_series(data=[1] * len(index), index=index) + result = data.drop(start) + expected_start = Timestamp("2017-10-29 00:15:00", tz="Europe/Berlin") + expected_idx = pd.date_range(expected_start, end, freq="15min") + expected = frame_or_series(data=[1] * len(expected_idx), index=expected_idx) + tm.assert_equal(result, expected) + + def test_drop_preserve_names(self): + index = MultiIndex.from_arrays( + [[0, 0, 0, 1, 1, 1], [1, 2, 3, 1, 2, 3]], names=["one", "two"] + ) + + df = DataFrame(np.random.default_rng(2).standard_normal((6, 3)), index=index) + + result = df.drop([(0, 2)]) + assert result.index.names == ("one", "two") + + @pytest.mark.parametrize( + "operation", ["__iadd__", "__isub__", "__imul__", "__ipow__"] + ) + @pytest.mark.parametrize("inplace", [False, True]) + def test_inplace_drop_and_operation(self, operation, inplace): + # GH#30484 + df = DataFrame({"x": range(5)}) + expected = df.copy() + df["y"] = range(5) + y = df["y"] + + with tm.assert_produces_warning(None): + if inplace: + df.drop("y", axis=1, inplace=inplace) + else: + df = df.drop("y", axis=1, inplace=inplace) + + # Perform operation and check result + getattr(y, operation)(1) + tm.assert_frame_equal(df, expected) + + def test_drop_with_non_unique_multiindex(self): + # GH#36293 + mi = MultiIndex.from_arrays([["x", "y", "x"], ["i", "j", "i"]]) + df = DataFrame([1, 2, 3], index=mi) + result = df.drop(index="x") + expected = DataFrame([2], index=MultiIndex.from_arrays([["y"], ["j"]])) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("indexer", [("a", "a"), [("a", "a")]]) + def test_drop_tuple_with_non_unique_multiindex(self, indexer): + # GH#42771 + idx = MultiIndex.from_product([["a", "b"], ["a", "a"]]) + df = DataFrame({"x": range(len(idx))}, index=idx) + result = df.drop(index=[("a", "a")]) + expected = DataFrame( + {"x": [2, 3]}, index=MultiIndex.from_tuples([("b", "a"), ("b", "a")]) + ) + tm.assert_frame_equal(result, expected) + + def test_drop_with_duplicate_columns(self): + df = DataFrame( + [[1, 5, 7.0], [1, 5, 7.0], [1, 5, 7.0]], columns=["bar", "a", "a"] + ) + result = df.drop(["a"], axis=1) + expected = DataFrame([[1], [1], [1]], columns=["bar"]) + tm.assert_frame_equal(result, expected) + result = df.drop("a", axis=1) + tm.assert_frame_equal(result, expected) + + def test_drop_with_duplicate_columns2(self): + # drop buggy GH#6240 + df = DataFrame( + { + "A": np.random.default_rng(2).standard_normal(5), + "B": np.random.default_rng(2).standard_normal(5), + "C": np.random.default_rng(2).standard_normal(5), + "D": ["a", "b", "c", "d", "e"], + } + ) + + expected = df.take([0, 1, 1], axis=1) + df2 = df.take([2, 0, 1, 2, 1], axis=1) + result = df2.drop("C", axis=1) + tm.assert_frame_equal(result, expected) + + def test_drop_inplace_no_leftover_column_reference(self): + # GH 13934 + df = DataFrame({"a": [1, 2, 3]}, columns=Index(["a"], dtype="object")) + a = df.a + df.drop(["a"], axis=1, inplace=True) + tm.assert_index_equal(df.columns, Index([], dtype="object")) + a -= a.mean() + tm.assert_index_equal(df.columns, Index([], dtype="object")) + + def test_drop_level_missing_label_multiindex(self): + # GH 18561 + df = DataFrame(index=MultiIndex.from_product([range(3), range(3)])) + with pytest.raises(KeyError, match="labels \\[5\\] not found in level"): + df.drop(5, level=0) + + @pytest.mark.parametrize("idx, level", [(["a", "b"], 0), (["a"], None)]) + def test_drop_index_ea_dtype(self, any_numeric_ea_dtype, idx, level): + # GH#45860 + df = DataFrame( + {"a": [1, 2, 2, pd.NA], "b": 100}, dtype=any_numeric_ea_dtype + ).set_index(idx) + result = df.drop(Index([2, pd.NA]), level=level) + expected = DataFrame( + {"a": [1], "b": 100}, dtype=any_numeric_ea_dtype + ).set_index(idx) + tm.assert_frame_equal(result, expected) + + def test_drop_parse_strings_datetime_index(self): + # GH #5355 + df = DataFrame( + {"a": [1, 2], "b": [1, 2]}, + index=[Timestamp("2000-01-03"), Timestamp("2000-01-04")], + ) + result = df.drop("2000-01-03", axis=0) + expected = DataFrame({"a": [2], "b": [2]}, index=[Timestamp("2000-01-04")]) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_drop_duplicates.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_drop_duplicates.py new file mode 100644 index 0000000000000000000000000000000000000000..6bea97b2cf189d81b99996cc8cc78a3b92f7afc0 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_drop_duplicates.py @@ -0,0 +1,473 @@ +from datetime import datetime +import re + +import numpy as np +import pytest + +from pandas import ( + DataFrame, + NaT, + concat, +) +import pandas._testing as tm + + +@pytest.mark.parametrize("subset", ["a", ["a"], ["a", "B"]]) +def test_drop_duplicates_with_misspelled_column_name(subset): + # GH 19730 + df = DataFrame({"A": [0, 0, 1], "B": [0, 0, 1], "C": [0, 0, 1]}) + msg = re.escape("Index(['a'], dtype=") + + with pytest.raises(KeyError, match=msg): + df.drop_duplicates(subset) + + +def test_drop_duplicates(): + df = DataFrame( + { + "AAA": ["foo", "bar", "foo", "bar", "foo", "bar", "bar", "foo"], + "B": ["one", "one", "two", "two", "two", "two", "one", "two"], + "C": [1, 1, 2, 2, 2, 2, 1, 2], + "D": range(8), + } + ) + # single column + result = df.drop_duplicates("AAA") + expected = df[:2] + tm.assert_frame_equal(result, expected) + + result = df.drop_duplicates("AAA", keep="last") + expected = df.loc[[6, 7]] + tm.assert_frame_equal(result, expected) + + result = df.drop_duplicates("AAA", keep=False) + expected = df.loc[[]] + tm.assert_frame_equal(result, expected) + assert len(result) == 0 + + # multi column + expected = df.loc[[0, 1, 2, 3]] + result = df.drop_duplicates(np.array(["AAA", "B"])) + tm.assert_frame_equal(result, expected) + result = df.drop_duplicates(["AAA", "B"]) + tm.assert_frame_equal(result, expected) + + result = df.drop_duplicates(("AAA", "B"), keep="last") + expected = df.loc[[0, 5, 6, 7]] + tm.assert_frame_equal(result, expected) + + result = df.drop_duplicates(("AAA", "B"), keep=False) + expected = df.loc[[0]] + tm.assert_frame_equal(result, expected) + + # consider everything + df2 = df.loc[:, ["AAA", "B", "C"]] + + result = df2.drop_duplicates() + # in this case only + expected = df2.drop_duplicates(["AAA", "B"]) + tm.assert_frame_equal(result, expected) + + result = df2.drop_duplicates(keep="last") + expected = df2.drop_duplicates(["AAA", "B"], keep="last") + tm.assert_frame_equal(result, expected) + + result = df2.drop_duplicates(keep=False) + expected = df2.drop_duplicates(["AAA", "B"], keep=False) + tm.assert_frame_equal(result, expected) + + # integers + result = df.drop_duplicates("C") + expected = df.iloc[[0, 2]] + tm.assert_frame_equal(result, expected) + result = df.drop_duplicates("C", keep="last") + expected = df.iloc[[-2, -1]] + tm.assert_frame_equal(result, expected) + + df["E"] = df["C"].astype("int8") + result = df.drop_duplicates("E") + expected = df.iloc[[0, 2]] + tm.assert_frame_equal(result, expected) + result = df.drop_duplicates("E", keep="last") + expected = df.iloc[[-2, -1]] + tm.assert_frame_equal(result, expected) + + # GH 11376 + df = DataFrame({"x": [7, 6, 3, 3, 4, 8, 0], "y": [0, 6, 5, 5, 9, 1, 2]}) + expected = df.loc[df.index != 3] + tm.assert_frame_equal(df.drop_duplicates(), expected) + + df = DataFrame([[1, 0], [0, 2]]) + tm.assert_frame_equal(df.drop_duplicates(), df) + + df = DataFrame([[-2, 0], [0, -4]]) + tm.assert_frame_equal(df.drop_duplicates(), df) + + x = np.iinfo(np.int64).max / 3 * 2 + df = DataFrame([[-x, x], [0, x + 4]]) + tm.assert_frame_equal(df.drop_duplicates(), df) + + df = DataFrame([[-x, x], [x, x + 4]]) + tm.assert_frame_equal(df.drop_duplicates(), df) + + # GH 11864 + df = DataFrame([i] * 9 for i in range(16)) + df = concat([df, DataFrame([[1] + [0] * 8])], ignore_index=True) + + for keep in ["first", "last", False]: + assert df.duplicated(keep=keep).sum() == 0 + + +def test_drop_duplicates_with_duplicate_column_names(): + # GH17836 + df = DataFrame([[1, 2, 5], [3, 4, 6], [3, 4, 7]], columns=["a", "a", "b"]) + + result0 = df.drop_duplicates() + tm.assert_frame_equal(result0, df) + + result1 = df.drop_duplicates("a") + expected1 = df[:2] + tm.assert_frame_equal(result1, expected1) + + +def test_drop_duplicates_for_take_all(): + df = DataFrame( + { + "AAA": ["foo", "bar", "baz", "bar", "foo", "bar", "qux", "foo"], + "B": ["one", "one", "two", "two", "two", "two", "one", "two"], + "C": [1, 1, 2, 2, 2, 2, 1, 2], + "D": range(8), + } + ) + # single column + result = df.drop_duplicates("AAA") + expected = df.iloc[[0, 1, 2, 6]] + tm.assert_frame_equal(result, expected) + + result = df.drop_duplicates("AAA", keep="last") + expected = df.iloc[[2, 5, 6, 7]] + tm.assert_frame_equal(result, expected) + + result = df.drop_duplicates("AAA", keep=False) + expected = df.iloc[[2, 6]] + tm.assert_frame_equal(result, expected) + + # multiple columns + result = df.drop_duplicates(["AAA", "B"]) + expected = df.iloc[[0, 1, 2, 3, 4, 6]] + tm.assert_frame_equal(result, expected) + + result = df.drop_duplicates(["AAA", "B"], keep="last") + expected = df.iloc[[0, 1, 2, 5, 6, 7]] + tm.assert_frame_equal(result, expected) + + result = df.drop_duplicates(["AAA", "B"], keep=False) + expected = df.iloc[[0, 1, 2, 6]] + tm.assert_frame_equal(result, expected) + + +def test_drop_duplicates_tuple(): + df = DataFrame( + { + ("AA", "AB"): ["foo", "bar", "foo", "bar", "foo", "bar", "bar", "foo"], + "B": ["one", "one", "two", "two", "two", "two", "one", "two"], + "C": [1, 1, 2, 2, 2, 2, 1, 2], + "D": range(8), + } + ) + # single column + result = df.drop_duplicates(("AA", "AB")) + expected = df[:2] + tm.assert_frame_equal(result, expected) + + result = df.drop_duplicates(("AA", "AB"), keep="last") + expected = df.loc[[6, 7]] + tm.assert_frame_equal(result, expected) + + result = df.drop_duplicates(("AA", "AB"), keep=False) + expected = df.loc[[]] # empty df + assert len(result) == 0 + tm.assert_frame_equal(result, expected) + + # multi column + expected = df.loc[[0, 1, 2, 3]] + result = df.drop_duplicates((("AA", "AB"), "B")) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "df", + [ + DataFrame(), + DataFrame(columns=[]), + DataFrame(columns=["A", "B", "C"]), + DataFrame(index=[]), + DataFrame(index=["A", "B", "C"]), + ], +) +def test_drop_duplicates_empty(df): + # GH 20516 + result = df.drop_duplicates() + tm.assert_frame_equal(result, df) + + result = df.copy() + result.drop_duplicates(inplace=True) + tm.assert_frame_equal(result, df) + + +def test_drop_duplicates_NA(): + # none + df = DataFrame( + { + "A": [None, None, "foo", "bar", "foo", "bar", "bar", "foo"], + "B": ["one", "one", "two", "two", "two", "two", "one", "two"], + "C": [1.0, np.nan, np.nan, np.nan, 1.0, 1.0, 1, 1.0], + "D": range(8), + } + ) + # single column + result = df.drop_duplicates("A") + expected = df.loc[[0, 2, 3]] + tm.assert_frame_equal(result, expected) + + result = df.drop_duplicates("A", keep="last") + expected = df.loc[[1, 6, 7]] + tm.assert_frame_equal(result, expected) + + result = df.drop_duplicates("A", keep=False) + expected = df.loc[[]] # empty df + tm.assert_frame_equal(result, expected) + assert len(result) == 0 + + # multi column + result = df.drop_duplicates(["A", "B"]) + expected = df.loc[[0, 2, 3, 6]] + tm.assert_frame_equal(result, expected) + + result = df.drop_duplicates(["A", "B"], keep="last") + expected = df.loc[[1, 5, 6, 7]] + tm.assert_frame_equal(result, expected) + + result = df.drop_duplicates(["A", "B"], keep=False) + expected = df.loc[[6]] + tm.assert_frame_equal(result, expected) + + # nan + df = DataFrame( + { + "A": ["foo", "bar", "foo", "bar", "foo", "bar", "bar", "foo"], + "B": ["one", "one", "two", "two", "two", "two", "one", "two"], + "C": [1.0, np.nan, np.nan, np.nan, 1.0, 1.0, 1, 1.0], + "D": range(8), + } + ) + # single column + result = df.drop_duplicates("C") + expected = df[:2] + tm.assert_frame_equal(result, expected) + + result = df.drop_duplicates("C", keep="last") + expected = df.loc[[3, 7]] + tm.assert_frame_equal(result, expected) + + result = df.drop_duplicates("C", keep=False) + expected = df.loc[[]] # empty df + tm.assert_frame_equal(result, expected) + assert len(result) == 0 + + # multi column + result = df.drop_duplicates(["C", "B"]) + expected = df.loc[[0, 1, 2, 4]] + tm.assert_frame_equal(result, expected) + + result = df.drop_duplicates(["C", "B"], keep="last") + expected = df.loc[[1, 3, 6, 7]] + tm.assert_frame_equal(result, expected) + + result = df.drop_duplicates(["C", "B"], keep=False) + expected = df.loc[[1]] + tm.assert_frame_equal(result, expected) + + +def test_drop_duplicates_NA_for_take_all(): + # none + df = DataFrame( + { + "A": [None, None, "foo", "bar", "foo", "baz", "bar", "qux"], + "C": [1.0, np.nan, np.nan, np.nan, 1.0, 2.0, 3, 1.0], + } + ) + + # single column + result = df.drop_duplicates("A") + expected = df.iloc[[0, 2, 3, 5, 7]] + tm.assert_frame_equal(result, expected) + + result = df.drop_duplicates("A", keep="last") + expected = df.iloc[[1, 4, 5, 6, 7]] + tm.assert_frame_equal(result, expected) + + result = df.drop_duplicates("A", keep=False) + expected = df.iloc[[5, 7]] + tm.assert_frame_equal(result, expected) + + # nan + + # single column + result = df.drop_duplicates("C") + expected = df.iloc[[0, 1, 5, 6]] + tm.assert_frame_equal(result, expected) + + result = df.drop_duplicates("C", keep="last") + expected = df.iloc[[3, 5, 6, 7]] + tm.assert_frame_equal(result, expected) + + result = df.drop_duplicates("C", keep=False) + expected = df.iloc[[5, 6]] + tm.assert_frame_equal(result, expected) + + +def test_drop_duplicates_inplace(): + orig = DataFrame( + { + "A": ["foo", "bar", "foo", "bar", "foo", "bar", "bar", "foo"], + "B": ["one", "one", "two", "two", "two", "two", "one", "two"], + "C": [1, 1, 2, 2, 2, 2, 1, 2], + "D": range(8), + } + ) + # single column + df = orig.copy() + return_value = df.drop_duplicates("A", inplace=True) + expected = orig[:2] + result = df + tm.assert_frame_equal(result, expected) + assert return_value is None + + df = orig.copy() + return_value = df.drop_duplicates("A", keep="last", inplace=True) + expected = orig.loc[[6, 7]] + result = df + tm.assert_frame_equal(result, expected) + assert return_value is None + + df = orig.copy() + return_value = df.drop_duplicates("A", keep=False, inplace=True) + expected = orig.loc[[]] + result = df + tm.assert_frame_equal(result, expected) + assert len(df) == 0 + assert return_value is None + + # multi column + df = orig.copy() + return_value = df.drop_duplicates(["A", "B"], inplace=True) + expected = orig.loc[[0, 1, 2, 3]] + result = df + tm.assert_frame_equal(result, expected) + assert return_value is None + + df = orig.copy() + return_value = df.drop_duplicates(["A", "B"], keep="last", inplace=True) + expected = orig.loc[[0, 5, 6, 7]] + result = df + tm.assert_frame_equal(result, expected) + assert return_value is None + + df = orig.copy() + return_value = df.drop_duplicates(["A", "B"], keep=False, inplace=True) + expected = orig.loc[[0]] + result = df + tm.assert_frame_equal(result, expected) + assert return_value is None + + # consider everything + orig2 = orig.loc[:, ["A", "B", "C"]].copy() + + df2 = orig2.copy() + return_value = df2.drop_duplicates(inplace=True) + # in this case only + expected = orig2.drop_duplicates(["A", "B"]) + result = df2 + tm.assert_frame_equal(result, expected) + assert return_value is None + + df2 = orig2.copy() + return_value = df2.drop_duplicates(keep="last", inplace=True) + expected = orig2.drop_duplicates(["A", "B"], keep="last") + result = df2 + tm.assert_frame_equal(result, expected) + assert return_value is None + + df2 = orig2.copy() + return_value = df2.drop_duplicates(keep=False, inplace=True) + expected = orig2.drop_duplicates(["A", "B"], keep=False) + result = df2 + tm.assert_frame_equal(result, expected) + assert return_value is None + + +@pytest.mark.parametrize("inplace", [True, False]) +@pytest.mark.parametrize( + "origin_dict, output_dict, ignore_index, output_index", + [ + ({"A": [2, 2, 3]}, {"A": [2, 3]}, True, [0, 1]), + ({"A": [2, 2, 3]}, {"A": [2, 3]}, False, [0, 2]), + ({"A": [2, 2, 3], "B": [2, 2, 4]}, {"A": [2, 3], "B": [2, 4]}, True, [0, 1]), + ({"A": [2, 2, 3], "B": [2, 2, 4]}, {"A": [2, 3], "B": [2, 4]}, False, [0, 2]), + ], +) +def test_drop_duplicates_ignore_index( + inplace, origin_dict, output_dict, ignore_index, output_index +): + # GH 30114 + df = DataFrame(origin_dict) + expected = DataFrame(output_dict, index=output_index) + + if inplace: + result_df = df.copy() + result_df.drop_duplicates(ignore_index=ignore_index, inplace=inplace) + else: + result_df = df.drop_duplicates(ignore_index=ignore_index, inplace=inplace) + + tm.assert_frame_equal(result_df, expected) + tm.assert_frame_equal(df, DataFrame(origin_dict)) + + +def test_drop_duplicates_null_in_object_column(nulls_fixture): + # https://github.com/pandas-dev/pandas/issues/32992 + df = DataFrame([[1, nulls_fixture], [2, "a"]], dtype=object) + result = df.drop_duplicates() + tm.assert_frame_equal(result, df) + + +def test_drop_duplicates_series_vs_dataframe(keep): + # GH#14192 + df = DataFrame( + { + "a": [1, 1, 1, "one", "one"], + "b": [2, 2, np.nan, np.nan, np.nan], + "c": [3, 3, np.nan, np.nan, "three"], + "d": [1, 2, 3, 4, 4], + "e": [ + datetime(2015, 1, 1), + datetime(2015, 1, 1), + datetime(2015, 2, 1), + NaT, + NaT, + ], + } + ) + for column in df.columns: + dropped_frame = df[[column]].drop_duplicates(keep=keep) + dropped_series = df[column].drop_duplicates(keep=keep) + tm.assert_frame_equal(dropped_frame, dropped_series.to_frame()) + + +@pytest.mark.parametrize("arg", [[1], 1, "True", [], 0]) +def test_drop_duplicates_non_boolean_ignore_index(arg): + # GH#38274 + df = DataFrame({"a": [1, 2, 1, 3]}) + msg = '^For argument "ignore_index" expected type bool, received type .*.$' + with pytest.raises(ValueError, match=msg): + df.drop_duplicates(ignore_index=arg) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_droplevel.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_droplevel.py new file mode 100644 index 0000000000000000000000000000000000000000..e1302d4b73f2b9c8e74b06c70ec29a92c1e48723 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_droplevel.py @@ -0,0 +1,36 @@ +import pytest + +from pandas import ( + DataFrame, + Index, + MultiIndex, +) +import pandas._testing as tm + + +class TestDropLevel: + def test_droplevel(self, frame_or_series): + # GH#20342 + cols = MultiIndex.from_tuples( + [("c", "e"), ("d", "f")], names=["level_1", "level_2"] + ) + mi = MultiIndex.from_tuples([(1, 2), (5, 6), (9, 10)], names=["a", "b"]) + df = DataFrame([[3, 4], [7, 8], [11, 12]], index=mi, columns=cols) + if frame_or_series is not DataFrame: + df = df.iloc[:, 0] + + # test that dropping of a level in index works + expected = df.reset_index("a", drop=True) + result = df.droplevel("a", axis="index") + tm.assert_equal(result, expected) + + if frame_or_series is DataFrame: + # test that dropping of a level in columns works + expected = df.copy() + expected.columns = Index(["c", "d"], name="level_1") + result = df.droplevel("level_2", axis="columns") + tm.assert_equal(result, expected) + else: + # test that droplevel raises ValueError on axis != 0 + with pytest.raises(ValueError, match="No axis named columns"): + df.droplevel(1, axis="columns") diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_dropna.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_dropna.py new file mode 100644 index 0000000000000000000000000000000000000000..7899b4aeac3fdef6548f3aadf76ff7718418f089 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_dropna.py @@ -0,0 +1,285 @@ +import datetime + +import dateutil +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + DataFrame, + Series, +) +import pandas._testing as tm + + +class TestDataFrameMissingData: + def test_dropEmptyRows(self, float_frame): + N = len(float_frame.index) + mat = np.random.default_rng(2).standard_normal(N) + mat[:5] = np.nan + + frame = DataFrame({"foo": mat}, index=float_frame.index) + original = Series(mat, index=float_frame.index, name="foo") + expected = original.dropna() + inplace_frame1, inplace_frame2 = frame.copy(), frame.copy() + + smaller_frame = frame.dropna(how="all") + # check that original was preserved + tm.assert_series_equal(frame["foo"], original) + return_value = inplace_frame1.dropna(how="all", inplace=True) + tm.assert_series_equal(smaller_frame["foo"], expected) + tm.assert_series_equal(inplace_frame1["foo"], expected) + assert return_value is None + + smaller_frame = frame.dropna(how="all", subset=["foo"]) + return_value = inplace_frame2.dropna(how="all", subset=["foo"], inplace=True) + tm.assert_series_equal(smaller_frame["foo"], expected) + tm.assert_series_equal(inplace_frame2["foo"], expected) + assert return_value is None + + def test_dropIncompleteRows(self, float_frame): + N = len(float_frame.index) + mat = np.random.default_rng(2).standard_normal(N) + mat[:5] = np.nan + + frame = DataFrame({"foo": mat}, index=float_frame.index) + frame["bar"] = 5 + original = Series(mat, index=float_frame.index, name="foo") + inp_frame1, inp_frame2 = frame.copy(), frame.copy() + + smaller_frame = frame.dropna() + tm.assert_series_equal(frame["foo"], original) + return_value = inp_frame1.dropna(inplace=True) + + exp = Series(mat[5:], index=float_frame.index[5:], name="foo") + tm.assert_series_equal(smaller_frame["foo"], exp) + tm.assert_series_equal(inp_frame1["foo"], exp) + assert return_value is None + + samesize_frame = frame.dropna(subset=["bar"]) + tm.assert_series_equal(frame["foo"], original) + assert (frame["bar"] == 5).all() + return_value = inp_frame2.dropna(subset=["bar"], inplace=True) + tm.assert_index_equal(samesize_frame.index, float_frame.index) + tm.assert_index_equal(inp_frame2.index, float_frame.index) + assert return_value is None + + def test_dropna(self): + df = DataFrame(np.random.default_rng(2).standard_normal((6, 4))) + df.iloc[:2, 2] = np.nan + + dropped = df.dropna(axis=1) + expected = df.loc[:, [0, 1, 3]] + inp = df.copy() + return_value = inp.dropna(axis=1, inplace=True) + tm.assert_frame_equal(dropped, expected) + tm.assert_frame_equal(inp, expected) + assert return_value is None + + dropped = df.dropna(axis=0) + expected = df.loc[list(range(2, 6))] + inp = df.copy() + return_value = inp.dropna(axis=0, inplace=True) + tm.assert_frame_equal(dropped, expected) + tm.assert_frame_equal(inp, expected) + assert return_value is None + + # threshold + dropped = df.dropna(axis=1, thresh=5) + expected = df.loc[:, [0, 1, 3]] + inp = df.copy() + return_value = inp.dropna(axis=1, thresh=5, inplace=True) + tm.assert_frame_equal(dropped, expected) + tm.assert_frame_equal(inp, expected) + assert return_value is None + + dropped = df.dropna(axis=0, thresh=4) + expected = df.loc[range(2, 6)] + inp = df.copy() + return_value = inp.dropna(axis=0, thresh=4, inplace=True) + tm.assert_frame_equal(dropped, expected) + tm.assert_frame_equal(inp, expected) + assert return_value is None + + dropped = df.dropna(axis=1, thresh=4) + tm.assert_frame_equal(dropped, df) + + dropped = df.dropna(axis=1, thresh=3) + tm.assert_frame_equal(dropped, df) + + # subset + dropped = df.dropna(axis=0, subset=[0, 1, 3]) + inp = df.copy() + return_value = inp.dropna(axis=0, subset=[0, 1, 3], inplace=True) + tm.assert_frame_equal(dropped, df) + tm.assert_frame_equal(inp, df) + assert return_value is None + + # all + dropped = df.dropna(axis=1, how="all") + tm.assert_frame_equal(dropped, df) + + df[2] = np.nan + dropped = df.dropna(axis=1, how="all") + expected = df.loc[:, [0, 1, 3]] + tm.assert_frame_equal(dropped, expected) + + # bad input + msg = "No axis named 3 for object type DataFrame" + with pytest.raises(ValueError, match=msg): + df.dropna(axis=3) + + def test_drop_and_dropna_caching(self): + # tst that cacher updates + original = Series([1, 2, np.nan], name="A") + expected = Series([1, 2], dtype=original.dtype, name="A") + df = DataFrame({"A": original.values.copy()}) + df2 = df.copy() + df["A"].dropna() + tm.assert_series_equal(df["A"], original) + + ser = df["A"] + return_value = ser.dropna(inplace=True) + tm.assert_series_equal(ser, expected) + tm.assert_series_equal(df["A"], original) + assert return_value is None + + df2["A"].drop([1]) + tm.assert_series_equal(df2["A"], original) + + ser = df2["A"] + return_value = ser.drop([1], inplace=True) + tm.assert_series_equal(ser, original.drop([1])) + tm.assert_series_equal(df2["A"], original) + assert return_value is None + + def test_dropna_corner(self, float_frame): + # bad input + msg = "invalid how option: foo" + with pytest.raises(ValueError, match=msg): + float_frame.dropna(how="foo") + # non-existent column - 8303 + with pytest.raises(KeyError, match=r"^\['X'\]$"): + float_frame.dropna(subset=["A", "X"]) + + def test_dropna_multiple_axes(self): + df = DataFrame( + [ + [1, np.nan, 2, 3], + [4, np.nan, 5, 6], + [np.nan, np.nan, np.nan, np.nan], + [7, np.nan, 8, 9], + ] + ) + + # GH20987 + with pytest.raises(TypeError, match="supplying multiple axes"): + df.dropna(how="all", axis=[0, 1]) + with pytest.raises(TypeError, match="supplying multiple axes"): + df.dropna(how="all", axis=(0, 1)) + + inp = df.copy() + with pytest.raises(TypeError, match="supplying multiple axes"): + inp.dropna(how="all", axis=(0, 1), inplace=True) + + def test_dropna_tz_aware_datetime(self): + # GH13407 + df = DataFrame() + dt1 = datetime.datetime(2015, 1, 1, tzinfo=dateutil.tz.tzutc()) + dt2 = datetime.datetime(2015, 2, 2, tzinfo=dateutil.tz.tzutc()) + df["Time"] = [dt1] + result = df.dropna(axis=0) + expected = DataFrame({"Time": [dt1]}) + tm.assert_frame_equal(result, expected) + + # Ex2 + df = DataFrame({"Time": [dt1, None, np.nan, dt2]}) + result = df.dropna(axis=0) + expected = DataFrame([dt1, dt2], columns=["Time"], index=[0, 3]) + tm.assert_frame_equal(result, expected) + + def test_dropna_categorical_interval_index(self): + # GH 25087 + ii = pd.IntervalIndex.from_breaks([0, 2.78, 3.14, 6.28]) + ci = pd.CategoricalIndex(ii) + df = DataFrame({"A": list("abc")}, index=ci) + + expected = df + result = df.dropna() + tm.assert_frame_equal(result, expected) + + def test_dropna_with_duplicate_columns(self): + df = DataFrame( + { + "A": np.random.default_rng(2).standard_normal(5), + "B": np.random.default_rng(2).standard_normal(5), + "C": np.random.default_rng(2).standard_normal(5), + "D": ["a", "b", "c", "d", "e"], + } + ) + df.iloc[2, [0, 1, 2]] = np.nan + df.iloc[0, 0] = np.nan + df.iloc[1, 1] = np.nan + df.iloc[:, 3] = np.nan + expected = df.dropna(subset=["A", "B", "C"], how="all") + expected.columns = ["A", "A", "B", "C"] + + df.columns = ["A", "A", "B", "C"] + + result = df.dropna(subset=["A", "C"], how="all") + tm.assert_frame_equal(result, expected) + + def test_set_single_column_subset(self): + # GH 41021 + df = DataFrame({"A": [1, 2, 3], "B": list("abc"), "C": [4, np.nan, 5]}) + expected = DataFrame( + {"A": [1, 3], "B": list("ac"), "C": [4.0, 5.0]}, index=[0, 2] + ) + result = df.dropna(subset="C") + tm.assert_frame_equal(result, expected) + + def test_single_column_not_present_in_axis(self): + # GH 41021 + df = DataFrame({"A": [1, 2, 3]}) + + # Column not present + with pytest.raises(KeyError, match="['D']"): + df.dropna(subset="D", axis=0) + + def test_subset_is_nparray(self): + # GH 41021 + df = DataFrame({"A": [1, 2, np.nan], "B": list("abc"), "C": [4, np.nan, 5]}) + expected = DataFrame({"A": [1.0], "B": ["a"], "C": [4.0]}) + result = df.dropna(subset=np.array(["A", "C"])) + tm.assert_frame_equal(result, expected) + + def test_no_nans_in_frame(self, axis): + # GH#41965 + df = DataFrame([[1, 2], [3, 4]], columns=pd.RangeIndex(0, 2)) + expected = df.copy() + result = df.dropna(axis=axis) + tm.assert_frame_equal(result, expected, check_index_type=True) + + def test_how_thresh_param_incompatible(self): + # GH46575 + df = DataFrame([1, 2, pd.NA]) + msg = "You cannot set both the how and thresh arguments at the same time" + with pytest.raises(TypeError, match=msg): + df.dropna(how="all", thresh=2) + + with pytest.raises(TypeError, match=msg): + df.dropna(how="any", thresh=2) + + with pytest.raises(TypeError, match=msg): + df.dropna(how=None, thresh=None) + + @pytest.mark.parametrize("val", [1, 1.5]) + def test_dropna_ignore_index(self, val): + # GH#31725 + df = DataFrame({"a": [1, 2, val]}, index=[3, 2, 1]) + result = df.dropna(ignore_index=True) + expected = DataFrame({"a": [1, 2, val]}) + tm.assert_frame_equal(result, expected) + + df.dropna(ignore_index=True, inplace=True) + tm.assert_frame_equal(df, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_dtypes.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_dtypes.py new file mode 100644 index 0000000000000000000000000000000000000000..524a5587dce10b477f570efa01407f0c0b190bfd --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_dtypes.py @@ -0,0 +1,150 @@ +from datetime import timedelta + +import numpy as np +import pytest + +from pandas.core.dtypes.dtypes import DatetimeTZDtype + +import pandas as pd +from pandas import ( + DataFrame, + Series, + date_range, + option_context, +) +import pandas._testing as tm + + +class TestDataFrameDataTypes: + def test_empty_frame_dtypes(self): + empty_df = DataFrame() + tm.assert_series_equal(empty_df.dtypes, Series(dtype=object)) + + nocols_df = DataFrame(index=[1, 2, 3]) + tm.assert_series_equal(nocols_df.dtypes, Series(dtype=object)) + + norows_df = DataFrame(columns=list("abc")) + tm.assert_series_equal(norows_df.dtypes, Series(object, index=list("abc"))) + + norows_int_df = DataFrame(columns=list("abc")).astype(np.int32) + tm.assert_series_equal( + norows_int_df.dtypes, Series(np.dtype("int32"), index=list("abc")) + ) + + df = DataFrame({"a": 1, "b": True, "c": 1.0}, index=[1, 2, 3]) + ex_dtypes = Series({"a": np.int64, "b": np.bool_, "c": np.float64}) + tm.assert_series_equal(df.dtypes, ex_dtypes) + + # same but for empty slice of df + tm.assert_series_equal(df[:0].dtypes, ex_dtypes) + + def test_datetime_with_tz_dtypes(self): + tzframe = DataFrame( + { + "A": date_range("20130101", periods=3), + "B": date_range("20130101", periods=3, tz="US/Eastern"), + "C": date_range("20130101", periods=3, tz="CET"), + } + ) + tzframe.iloc[1, 1] = pd.NaT + tzframe.iloc[1, 2] = pd.NaT + result = tzframe.dtypes.sort_index() + expected = Series( + [ + np.dtype("datetime64[ns]"), + DatetimeTZDtype("ns", "US/Eastern"), + DatetimeTZDtype("ns", "CET"), + ], + ["A", "B", "C"], + ) + + tm.assert_series_equal(result, expected) + + def test_dtypes_are_correct_after_column_slice(self): + # GH6525 + df = DataFrame(index=range(5), columns=list("abc"), dtype=np.float64) + tm.assert_series_equal( + df.dtypes, + Series({"a": np.float64, "b": np.float64, "c": np.float64}), + ) + tm.assert_series_equal(df.iloc[:, 2:].dtypes, Series({"c": np.float64})) + tm.assert_series_equal( + df.dtypes, + Series({"a": np.float64, "b": np.float64, "c": np.float64}), + ) + + @pytest.mark.parametrize( + "data", + [pd.NA, True], + ) + def test_dtypes_are_correct_after_groupby_last(self, data): + # GH46409 + df = DataFrame( + {"id": [1, 2, 3, 4], "test": [True, pd.NA, data, False]} + ).convert_dtypes() + result = df.groupby("id").last().test + expected = df.set_index("id").test + assert result.dtype == pd.BooleanDtype() + tm.assert_series_equal(expected, result) + + def test_dtypes_gh8722(self, float_string_frame): + float_string_frame["bool"] = float_string_frame["A"] > 0 + result = float_string_frame.dtypes + expected = Series( + {k: v.dtype for k, v in float_string_frame.items()}, index=result.index + ) + tm.assert_series_equal(result, expected) + + # compat, GH 8722 + msg = "use_inf_as_na option is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + with option_context("use_inf_as_na", True): + df = DataFrame([[1]]) + result = df.dtypes + tm.assert_series_equal(result, Series({0: np.dtype("int64")})) + + def test_dtypes_timedeltas(self): + df = DataFrame( + { + "A": Series(date_range("2012-1-1", periods=3, freq="D")), + "B": Series([timedelta(days=i) for i in range(3)]), + } + ) + result = df.dtypes + expected = Series( + [np.dtype("datetime64[ns]"), np.dtype("timedelta64[ns]")], index=list("AB") + ) + tm.assert_series_equal(result, expected) + + df["C"] = df["A"] + df["B"] + result = df.dtypes + expected = Series( + [ + np.dtype("datetime64[ns]"), + np.dtype("timedelta64[ns]"), + np.dtype("datetime64[ns]"), + ], + index=list("ABC"), + ) + tm.assert_series_equal(result, expected) + + # mixed int types + df["D"] = 1 + result = df.dtypes + expected = Series( + [ + np.dtype("datetime64[ns]"), + np.dtype("timedelta64[ns]"), + np.dtype("datetime64[ns]"), + np.dtype("int64"), + ], + index=list("ABCD"), + ) + tm.assert_series_equal(result, expected) + + def test_frame_apply_np_array_return_type(self, using_infer_string): + # GH 35517 + df = DataFrame([["foo"]]) + result = df.apply(lambda col: np.array("bar")) + expected = Series(np.array("bar")) + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_duplicated.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_duplicated.py new file mode 100644 index 0000000000000000000000000000000000000000..6052b61ea8db5b8c81c879250129a81634a33de0 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_duplicated.py @@ -0,0 +1,117 @@ +import re +import sys + +import numpy as np +import pytest + +from pandas import ( + DataFrame, + Series, + date_range, +) +import pandas._testing as tm + + +@pytest.mark.parametrize("subset", ["a", ["a"], ["a", "B"]]) +def test_duplicated_with_misspelled_column_name(subset): + # GH 19730 + df = DataFrame({"A": [0, 0, 1], "B": [0, 0, 1], "C": [0, 0, 1]}) + msg = re.escape("Index(['a'], dtype=") + + with pytest.raises(KeyError, match=msg): + df.duplicated(subset) + + +def test_duplicated_implemented_no_recursion(): + # gh-21524 + # Ensure duplicated isn't implemented using recursion that + # can fail on wide frames + df = DataFrame(np.random.default_rng(2).integers(0, 1000, (10, 1000))) + rec_limit = sys.getrecursionlimit() + try: + sys.setrecursionlimit(100) + result = df.duplicated() + finally: + sys.setrecursionlimit(rec_limit) + + # Then duplicates produce the bool Series as a result and don't fail during + # calculation. Actual values doesn't matter here, though usually it's all + # False in this case + assert isinstance(result, Series) + assert result.dtype == np.bool_ + + +@pytest.mark.parametrize( + "keep, expected", + [ + ("first", Series([False, False, True, False, True])), + ("last", Series([True, True, False, False, False])), + (False, Series([True, True, True, False, True])), + ], +) +def test_duplicated_keep(keep, expected): + df = DataFrame({"A": [0, 1, 1, 2, 0], "B": ["a", "b", "b", "c", "a"]}) + + result = df.duplicated(keep=keep) + tm.assert_series_equal(result, expected) + + +@pytest.mark.xfail(reason="GH#21720; nan/None falsely considered equal") +@pytest.mark.parametrize( + "keep, expected", + [ + ("first", Series([False, False, True, False, True])), + ("last", Series([True, True, False, False, False])), + (False, Series([True, True, True, False, True])), + ], +) +def test_duplicated_nan_none(keep, expected): + df = DataFrame({"C": [np.nan, 3, 3, None, np.nan], "x": 1}, dtype=object) + + result = df.duplicated(keep=keep) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("subset", [None, ["A", "B"], "A"]) +def test_duplicated_subset(subset, keep): + df = DataFrame( + { + "A": [0, 1, 1, 2, 0], + "B": ["a", "b", "b", "c", "a"], + "C": [np.nan, 3, 3, None, np.nan], + } + ) + + if subset is None: + subset = list(df.columns) + elif isinstance(subset, str): + # need to have a DataFrame, not a Series + # -> select columns with singleton list, not string + subset = [subset] + + expected = df[subset].duplicated(keep=keep) + result = df.duplicated(keep=keep, subset=subset) + tm.assert_series_equal(result, expected) + + +def test_duplicated_on_empty_frame(): + # GH 25184 + + df = DataFrame(columns=["a", "b"]) + dupes = df.duplicated("a") + + result = df[dupes] + expected = df.copy() + tm.assert_frame_equal(result, expected) + + +def test_frame_datetime64_duplicated(): + dates = date_range("2010-07-01", end="2010-08-05") + + tst = DataFrame({"symbol": "AAA", "date": dates}) + result = tst.duplicated(["date", "symbol"]) + assert (-result).all() + + tst = DataFrame({"date": dates}) + result = tst.date.duplicated() + assert (-result).all() diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_equals.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_equals.py new file mode 100644 index 0000000000000000000000000000000000000000..d0b9d96cafa0db15203cb3057517571a178b25db --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_equals.py @@ -0,0 +1,85 @@ +import numpy as np + +from pandas import ( + DataFrame, + date_range, +) +import pandas._testing as tm + + +class TestEquals: + def test_dataframe_not_equal(self): + # see GH#28839 + df1 = DataFrame({"a": [1, 2], "b": ["s", "d"]}) + df2 = DataFrame({"a": ["s", "d"], "b": [1, 2]}) + assert df1.equals(df2) is False + + def test_equals_different_blocks(self, using_array_manager, using_infer_string): + # GH#9330 + df0 = DataFrame({"A": ["x", "y"], "B": [1, 2], "C": ["w", "z"]}) + df1 = df0.reset_index()[["A", "B", "C"]] + if not using_array_manager and not using_infer_string: + # this assert verifies that the above operations have + # induced a block rearrangement + assert df0._mgr.blocks[0].dtype != df1._mgr.blocks[0].dtype + + # do the real tests + tm.assert_frame_equal(df0, df1) + assert df0.equals(df1) + assert df1.equals(df0) + + def test_equals(self): + # Add object dtype column with nans + index = np.random.default_rng(2).random(10) + df1 = DataFrame( + np.random.default_rng(2).random(10), index=index, columns=["floats"] + ) + df1["text"] = "the sky is so blue. we could use more chocolate.".split() + df1["start"] = date_range("2000-1-1", periods=10, freq="min") + df1["end"] = date_range("2000-1-1", periods=10, freq="D") + df1["diff"] = df1["end"] - df1["start"] + # Explicitly cast to object, to avoid implicit cast when setting np.nan + df1["bool"] = (np.arange(10) % 3 == 0).astype(object) + df1.loc[::2] = np.nan + df2 = df1.copy() + assert df1["text"].equals(df2["text"]) + assert df1["start"].equals(df2["start"]) + assert df1["end"].equals(df2["end"]) + assert df1["diff"].equals(df2["diff"]) + assert df1["bool"].equals(df2["bool"]) + assert df1.equals(df2) + assert not df1.equals(object) + + # different dtype + different = df1.copy() + different["floats"] = different["floats"].astype("float32") + assert not df1.equals(different) + + # different index + different_index = -index + different = df2.set_index(different_index) + assert not df1.equals(different) + + # different columns + different = df2.copy() + different.columns = df2.columns[::-1] + assert not df1.equals(different) + + # DatetimeIndex + index = date_range("2000-1-1", periods=10, freq="min") + df1 = df1.set_index(index) + df2 = df1.copy() + assert df1.equals(df2) + + # MultiIndex + df3 = df1.set_index(["text"], append=True) + df2 = df1.set_index(["text"], append=True) + assert df3.equals(df2) + + df2 = df1.set_index(["floats"], append=True) + assert not df3.equals(df2) + + # NaN in index + df3 = df1.set_index(["floats"], append=True) + df2 = df1.set_index(["floats"], append=True) + assert df3.equals(df2) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_explode.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_explode.py new file mode 100644 index 0000000000000000000000000000000000000000..bc3fdb56e649bdbc9d7ee21bd61f6b25da52c617 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_explode.py @@ -0,0 +1,311 @@ +import re + +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm + + +def test_error(): + df = pd.DataFrame( + {"A": pd.Series([[0, 1, 2], np.nan, [], (3, 4)], index=list("abcd")), "B": 1} + ) + with pytest.raises( + ValueError, match="column must be a scalar, tuple, or list thereof" + ): + df.explode([list("AA")]) + + with pytest.raises(ValueError, match="column must be unique"): + df.explode(list("AA")) + + df.columns = list("AA") + with pytest.raises( + ValueError, + match=re.escape("DataFrame columns must be unique. Duplicate columns: ['A']"), + ): + df.explode("A") + + +@pytest.mark.parametrize( + "input_subset, error_message", + [ + ( + list("AC"), + "columns must have matching element counts", + ), + ( + [], + "column must be nonempty", + ), + ( + list("AC"), + "columns must have matching element counts", + ), + ], +) +def test_error_multi_columns(input_subset, error_message): + # GH 39240 + df = pd.DataFrame( + { + "A": [[0, 1, 2], np.nan, [], (3, 4)], + "B": 1, + "C": [["a", "b", "c"], "foo", [], ["d", "e", "f"]], + }, + index=list("abcd"), + ) + with pytest.raises(ValueError, match=error_message): + df.explode(input_subset) + + +@pytest.mark.parametrize( + "scalar", + ["a", 0, 1.5, pd.Timedelta("1 days"), pd.Timestamp("2019-12-31")], +) +def test_basic(scalar): + df = pd.DataFrame( + {scalar: pd.Series([[0, 1, 2], np.nan, [], (3, 4)], index=list("abcd")), "B": 1} + ) + result = df.explode(scalar) + expected = pd.DataFrame( + { + scalar: pd.Series( + [0, 1, 2, np.nan, np.nan, 3, 4], index=list("aaabcdd"), dtype=object + ), + "B": 1, + } + ) + tm.assert_frame_equal(result, expected) + + +def test_multi_index_rows(): + df = pd.DataFrame( + {"A": np.array([[0, 1, 2], np.nan, [], (3, 4)], dtype=object), "B": 1}, + index=pd.MultiIndex.from_tuples([("a", 1), ("a", 2), ("b", 1), ("b", 2)]), + ) + + result = df.explode("A") + expected = pd.DataFrame( + { + "A": pd.Series( + [0, 1, 2, np.nan, np.nan, 3, 4], + index=pd.MultiIndex.from_tuples( + [ + ("a", 1), + ("a", 1), + ("a", 1), + ("a", 2), + ("b", 1), + ("b", 2), + ("b", 2), + ] + ), + dtype=object, + ), + "B": 1, + } + ) + tm.assert_frame_equal(result, expected) + + +def test_multi_index_columns(): + df = pd.DataFrame( + {("A", 1): np.array([[0, 1, 2], np.nan, [], (3, 4)], dtype=object), ("A", 2): 1} + ) + + result = df.explode(("A", 1)) + expected = pd.DataFrame( + { + ("A", 1): pd.Series( + [0, 1, 2, np.nan, np.nan, 3, 4], + index=pd.Index([0, 0, 0, 1, 2, 3, 3]), + dtype=object, + ), + ("A", 2): 1, + } + ) + tm.assert_frame_equal(result, expected) + + +def test_usecase(): + # explode a single column + # gh-10511 + df = pd.DataFrame( + [[11, range(5), 10], [22, range(3), 20]], columns=list("ABC") + ).set_index("C") + result = df.explode("B") + + expected = pd.DataFrame( + { + "A": [11, 11, 11, 11, 11, 22, 22, 22], + "B": np.array([0, 1, 2, 3, 4, 0, 1, 2], dtype=object), + "C": [10, 10, 10, 10, 10, 20, 20, 20], + }, + columns=list("ABC"), + ).set_index("C") + + tm.assert_frame_equal(result, expected) + + # gh-8517 + df = pd.DataFrame( + [["2014-01-01", "Alice", "A B"], ["2014-01-02", "Bob", "C D"]], + columns=["dt", "name", "text"], + ) + result = df.assign(text=df.text.str.split(" ")).explode("text") + expected = pd.DataFrame( + [ + ["2014-01-01", "Alice", "A"], + ["2014-01-01", "Alice", "B"], + ["2014-01-02", "Bob", "C"], + ["2014-01-02", "Bob", "D"], + ], + columns=["dt", "name", "text"], + index=[0, 0, 1, 1], + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "input_dict, input_index, expected_dict, expected_index", + [ + ( + {"col1": [[1, 2], [3, 4]], "col2": ["foo", "bar"]}, + [0, 0], + {"col1": [1, 2, 3, 4], "col2": ["foo", "foo", "bar", "bar"]}, + [0, 0, 0, 0], + ), + ( + {"col1": [[1, 2], [3, 4]], "col2": ["foo", "bar"]}, + pd.Index([0, 0], name="my_index"), + {"col1": [1, 2, 3, 4], "col2": ["foo", "foo", "bar", "bar"]}, + pd.Index([0, 0, 0, 0], name="my_index"), + ), + ( + {"col1": [[1, 2], [3, 4]], "col2": ["foo", "bar"]}, + pd.MultiIndex.from_arrays( + [[0, 0], [1, 1]], names=["my_first_index", "my_second_index"] + ), + {"col1": [1, 2, 3, 4], "col2": ["foo", "foo", "bar", "bar"]}, + pd.MultiIndex.from_arrays( + [[0, 0, 0, 0], [1, 1, 1, 1]], + names=["my_first_index", "my_second_index"], + ), + ), + ( + {"col1": [[1, 2], [3, 4]], "col2": ["foo", "bar"]}, + pd.MultiIndex.from_arrays([[0, 0], [1, 1]], names=["my_index", None]), + {"col1": [1, 2, 3, 4], "col2": ["foo", "foo", "bar", "bar"]}, + pd.MultiIndex.from_arrays( + [[0, 0, 0, 0], [1, 1, 1, 1]], names=["my_index", None] + ), + ), + ], +) +def test_duplicate_index(input_dict, input_index, expected_dict, expected_index): + # GH 28005 + df = pd.DataFrame(input_dict, index=input_index, dtype=object) + result = df.explode("col1") + expected = pd.DataFrame(expected_dict, index=expected_index, dtype=object) + tm.assert_frame_equal(result, expected) + + +def test_ignore_index(): + # GH 34932 + df = pd.DataFrame({"id": range(0, 20, 10), "values": [list("ab"), list("cd")]}) + result = df.explode("values", ignore_index=True) + expected = pd.DataFrame( + {"id": [0, 0, 10, 10], "values": list("abcd")}, index=[0, 1, 2, 3] + ) + tm.assert_frame_equal(result, expected) + + +def test_explode_sets(): + # https://github.com/pandas-dev/pandas/issues/35614 + df = pd.DataFrame({"a": [{"x", "y"}], "b": [1]}, index=[1]) + result = df.explode(column="a").sort_values(by="a") + expected = pd.DataFrame({"a": ["x", "y"], "b": [1, 1]}, index=[1, 1]) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "input_subset, expected_dict, expected_index", + [ + ( + list("AC"), + { + "A": pd.Series( + [0, 1, 2, np.nan, np.nan, 3, 4, np.nan], + index=list("aaabcdde"), + dtype=object, + ), + "B": 1, + "C": ["a", "b", "c", "foo", np.nan, "d", "e", np.nan], + }, + list("aaabcdde"), + ), + ( + list("A"), + { + "A": pd.Series( + [0, 1, 2, np.nan, np.nan, 3, 4, np.nan], + index=list("aaabcdde"), + dtype=object, + ), + "B": 1, + "C": [ + ["a", "b", "c"], + ["a", "b", "c"], + ["a", "b", "c"], + "foo", + [], + ["d", "e"], + ["d", "e"], + np.nan, + ], + }, + list("aaabcdde"), + ), + ], +) +def test_multi_columns(input_subset, expected_dict, expected_index): + # GH 39240 + df = pd.DataFrame( + { + "A": [[0, 1, 2], np.nan, [], (3, 4), np.nan], + "B": 1, + "C": [["a", "b", "c"], "foo", [], ["d", "e"], np.nan], + }, + index=list("abcde"), + ) + result = df.explode(input_subset) + expected = pd.DataFrame(expected_dict, expected_index) + tm.assert_frame_equal(result, expected) + + +def test_multi_columns_nan_empty(): + # GH 46084 + df = pd.DataFrame( + { + "A": [[0, 1], [5], [], [2, 3]], + "B": [9, 8, 7, 6], + "C": [[1, 2], np.nan, [], [3, 4]], + } + ) + result = df.explode(["A", "C"]) + expected = pd.DataFrame( + { + "A": np.array([0, 1, 5, np.nan, 2, 3], dtype=object), + "B": [9, 9, 8, 7, 6, 6], + "C": np.array([1, 2, np.nan, np.nan, 3, 4], dtype=object), + }, + index=[0, 0, 1, 2, 3, 3], + ) + tm.assert_frame_equal(result, expected) + + +def test_str_dtype(): + # https://github.com/pandas-dev/pandas/pull/61623 + df = pd.DataFrame({"a": ["x", "y"]}, dtype="str") + result = df.explode(column="a") + assert result is not df + tm.assert_frame_equal(result, df) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_fillna.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_fillna.py new file mode 100644 index 0000000000000000000000000000000000000000..b6f4680bff73ed43aa593eb6f430ca6da6cd884a --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_fillna.py @@ -0,0 +1,916 @@ +import numpy as np +import pytest + +from pandas.compat import WARNING_CHECK_DISABLED +import pandas.util._test_decorators as td + +from pandas import ( + Categorical, + DataFrame, + DatetimeIndex, + NaT, + PeriodIndex, + Series, + TimedeltaIndex, + Timestamp, + date_range, + to_datetime, +) +import pandas._testing as tm +from pandas.tests.frame.common import _check_mixed_float + + +class TestFillNA: + def test_fillna_dict_inplace_nonunique_columns( + self, using_copy_on_write, warn_copy_on_write + ): + df = DataFrame( + {"A": [np.nan] * 3, "B": [NaT, Timestamp(1), NaT], "C": [np.nan, "foo", 2]} + ) + df.columns = ["A", "A", "A"] + orig = df[:] + + # TODO(CoW-warn) better warning message + with tm.assert_cow_warning(warn_copy_on_write): + df.fillna({"A": 2}, inplace=True) + # The first and third columns can be set inplace, while the second cannot. + + expected = DataFrame( + {"A": [2.0] * 3, "B": [2, Timestamp(1), 2], "C": [2, "foo", 2]} + ) + expected.columns = ["A", "A", "A"] + tm.assert_frame_equal(df, expected) + + # TODO: what's the expected/desired behavior with CoW? + if not using_copy_on_write: + assert tm.shares_memory(df.iloc[:, 0], orig.iloc[:, 0]) + assert not tm.shares_memory(df.iloc[:, 1], orig.iloc[:, 1]) + if not using_copy_on_write: + assert tm.shares_memory(df.iloc[:, 2], orig.iloc[:, 2]) + + @td.skip_array_manager_not_yet_implemented + def test_fillna_on_column_view(self, using_copy_on_write): + # GH#46149 avoid unnecessary copies + arr = np.full((40, 50), np.nan) + df = DataFrame(arr, copy=False) + + if using_copy_on_write: + with tm.raises_chained_assignment_error(): + df[0].fillna(-1, inplace=True) + assert np.isnan(arr[:, 0]).all() + else: + with tm.assert_produces_warning( + FutureWarning if not WARNING_CHECK_DISABLED else None, + match="inplace method", + ): + df[0].fillna(-1, inplace=True) + assert (arr[:, 0] == -1).all() + + # i.e. we didn't create a new 49-column block + assert len(df._mgr.arrays) == 1 + assert np.shares_memory(df.values, arr) + + def test_fillna_datetime(self, datetime_frame): + tf = datetime_frame + tf.loc[tf.index[:5], "A"] = np.nan + tf.loc[tf.index[-5:], "A"] = np.nan + + zero_filled = datetime_frame.fillna(0) + assert (zero_filled.loc[zero_filled.index[:5], "A"] == 0).all() + + msg = "DataFrame.fillna with 'method' is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + padded = datetime_frame.fillna(method="pad") + assert np.isnan(padded.loc[padded.index[:5], "A"]).all() + assert ( + padded.loc[padded.index[-5:], "A"] == padded.loc[padded.index[-5], "A"] + ).all() + + msg = "Must specify a fill 'value' or 'method'" + with pytest.raises(ValueError, match=msg): + datetime_frame.fillna() + msg = "Cannot specify both 'value' and 'method'" + with pytest.raises(ValueError, match=msg): + datetime_frame.fillna(5, method="ffill") + + def test_fillna_mixed_type(self, float_string_frame): + mf = float_string_frame + mf.loc[mf.index[5:20], "foo"] = np.nan + mf.loc[mf.index[-10:], "A"] = np.nan + # TODO: make stronger assertion here, GH 25640 + mf.fillna(value=0) + msg = "DataFrame.fillna with 'method' is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + mf.fillna(method="pad") + + def test_fillna_mixed_float(self, mixed_float_frame): + # mixed numeric (but no float16) + mf = mixed_float_frame.reindex(columns=["A", "B", "D"]) + mf.loc[mf.index[-10:], "A"] = np.nan + result = mf.fillna(value=0) + _check_mixed_float(result, dtype={"C": None}) + + msg = "DataFrame.fillna with 'method' is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = mf.fillna(method="pad") + _check_mixed_float(result, dtype={"C": None}) + + def test_fillna_empty(self, using_copy_on_write): + if using_copy_on_write: + pytest.skip("condition is unnecessary complex and is deprecated anyway") + # empty frame (GH#2778) + df = DataFrame(columns=["x"]) + for m in ["pad", "backfill"]: + msg = "Series.fillna with 'method' is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + df.x.fillna(method=m, inplace=True) + df.x.fillna(method=m) + + def test_fillna_different_dtype(self): + # with different dtype (GH#3386) + df = DataFrame( + [["a", "a", np.nan, "a"], ["b", "b", np.nan, "b"], ["c", "c", np.nan, "c"]] + ) + + result = df.fillna({2: "foo"}) + expected = DataFrame( + [["a", "a", "foo", "a"], ["b", "b", "foo", "b"], ["c", "c", "foo", "c"]] + ) + # column is originally float (all-NaN) -> filling with string gives object dtype + expected[2] = expected[2].astype("object") + tm.assert_frame_equal(result, expected) + + return_value = df.fillna({2: "foo"}, inplace=True) + tm.assert_frame_equal(df, expected) + assert return_value is None + + def test_fillna_limit_and_value(self): + # limit and value + df = DataFrame(np.random.default_rng(2).standard_normal((10, 3))) + df.iloc[2:7, 0] = np.nan + df.iloc[3:5, 2] = np.nan + + expected = df.copy() + expected.iloc[2, 0] = 999 + expected.iloc[3, 2] = 999 + result = df.fillna(999, limit=1) + tm.assert_frame_equal(result, expected) + + def test_fillna_datelike(self): + # with datelike + # GH#6344 + df = DataFrame( + { + "Date": [NaT, Timestamp("2014-1-1")], + "Date2": [Timestamp("2013-1-1"), NaT], + } + ) + + expected = df.copy() + expected["Date"] = expected["Date"].fillna(df.loc[df.index[0], "Date2"]) + result = df.fillna(value={"Date": df["Date2"]}) + tm.assert_frame_equal(result, expected) + + def test_fillna_tzaware(self): + # with timezone + # GH#15855 + df = DataFrame({"A": [Timestamp("2012-11-11 00:00:00+01:00"), NaT]}) + exp = DataFrame( + { + "A": [ + Timestamp("2012-11-11 00:00:00+01:00"), + Timestamp("2012-11-11 00:00:00+01:00"), + ] + } + ) + msg = "DataFrame.fillna with 'method' is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + res = df.fillna(method="pad") + tm.assert_frame_equal(res, exp) + + df = DataFrame({"A": [NaT, Timestamp("2012-11-11 00:00:00+01:00")]}) + exp = DataFrame( + { + "A": [ + Timestamp("2012-11-11 00:00:00+01:00"), + Timestamp("2012-11-11 00:00:00+01:00"), + ] + } + ) + msg = "DataFrame.fillna with 'method' is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + res = df.fillna(method="bfill") + tm.assert_frame_equal(res, exp) + + def test_fillna_tzaware_different_column(self): + # with timezone in another column + # GH#15522 + df = DataFrame( + { + "A": date_range("20130101", periods=4, tz="US/Eastern"), + "B": [1, 2, np.nan, np.nan], + } + ) + msg = "DataFrame.fillna with 'method' is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.fillna(method="pad") + expected = DataFrame( + { + "A": date_range("20130101", periods=4, tz="US/Eastern"), + "B": [1.0, 2.0, 2.0, 2.0], + } + ) + tm.assert_frame_equal(result, expected) + + def test_na_actions_categorical(self): + cat = Categorical([1, 2, 3, np.nan], categories=[1, 2, 3]) + vals = ["a", "b", np.nan, "d"] + df = DataFrame({"cats": cat, "vals": vals}) + cat2 = Categorical([1, 2, 3, 3], categories=[1, 2, 3]) + vals2 = ["a", "b", "b", "d"] + df_exp_fill = DataFrame({"cats": cat2, "vals": vals2}) + cat3 = Categorical([1, 2, 3], categories=[1, 2, 3]) + vals3 = ["a", "b", np.nan] + df_exp_drop_cats = DataFrame({"cats": cat3, "vals": vals3}) + cat4 = Categorical([1, 2], categories=[1, 2, 3]) + vals4 = ["a", "b"] + df_exp_drop_all = DataFrame({"cats": cat4, "vals": vals4}) + + # fillna + res = df.fillna(value={"cats": 3, "vals": "b"}) + tm.assert_frame_equal(res, df_exp_fill) + + msg = "Cannot setitem on a Categorical with a new category" + with pytest.raises(TypeError, match=msg): + df.fillna(value={"cats": 4, "vals": "c"}) + + msg = "DataFrame.fillna with 'method' is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + res = df.fillna(method="pad") + tm.assert_frame_equal(res, df_exp_fill) + + # dropna + res = df.dropna(subset=["cats"]) + tm.assert_frame_equal(res, df_exp_drop_cats) + + res = df.dropna() + tm.assert_frame_equal(res, df_exp_drop_all) + + # make sure that fillna takes missing values into account + c = Categorical([np.nan, "b", np.nan], categories=["a", "b"]) + df = DataFrame({"cats": c, "vals": [1, 2, 3]}) + + cat_exp = Categorical(["a", "b", "a"], categories=["a", "b"]) + df_exp = DataFrame({"cats": cat_exp, "vals": [1, 2, 3]}) + + res = df.fillna("a") + tm.assert_frame_equal(res, df_exp) + + def test_fillna_categorical_nan(self): + # GH#14021 + # np.nan should always be a valid filler + cat = Categorical([np.nan, 2, np.nan]) + val = Categorical([np.nan, np.nan, np.nan]) + df = DataFrame({"cats": cat, "vals": val}) + + # GH#32950 df.median() is poorly behaved because there is no + # Categorical.median + median = Series({"cats": 2.0, "vals": np.nan}) + + res = df.fillna(median) + v_exp = [np.nan, np.nan, np.nan] + df_exp = DataFrame({"cats": [2, 2, 2], "vals": v_exp}, dtype="category") + tm.assert_frame_equal(res, df_exp) + + result = df.cats.fillna(np.nan) + tm.assert_series_equal(result, df.cats) + + result = df.vals.fillna(np.nan) + tm.assert_series_equal(result, df.vals) + + idx = DatetimeIndex( + ["2011-01-01 09:00", "2016-01-01 23:45", "2011-01-01 09:00", NaT, NaT] + ) + df = DataFrame({"a": Categorical(idx)}) + tm.assert_frame_equal(df.fillna(value=NaT), df) + + idx = PeriodIndex(["2011-01", "2011-01", "2011-01", NaT, NaT], freq="M") + df = DataFrame({"a": Categorical(idx)}) + tm.assert_frame_equal(df.fillna(value=NaT), df) + + idx = TimedeltaIndex(["1 days", "2 days", "1 days", NaT, NaT]) + df = DataFrame({"a": Categorical(idx)}) + tm.assert_frame_equal(df.fillna(value=NaT), df) + + def test_fillna_downcast(self): + # GH#15277 + # infer int64 from float64 + df = DataFrame({"a": [1.0, np.nan]}) + msg = "The 'downcast' keyword in fillna is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.fillna(0, downcast="infer") + expected = DataFrame({"a": [1, 0]}) + tm.assert_frame_equal(result, expected) + + # infer int64 from float64 when fillna value is a dict + df = DataFrame({"a": [1.0, np.nan]}) + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.fillna({"a": 0}, downcast="infer") + expected = DataFrame({"a": [1, 0]}) + tm.assert_frame_equal(result, expected) + + def test_fillna_downcast_false(self, frame_or_series): + # GH#45603 preserve object dtype with downcast=False + obj = frame_or_series([1, 2, 3], dtype="object") + msg = "The 'downcast' keyword in fillna" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = obj.fillna("", downcast=False) + tm.assert_equal(result, obj) + + def test_fillna_downcast_noop(self, frame_or_series): + # GH#45423 + # Two relevant paths: + # 1) not _can_hold_na (e.g. integer) + # 2) _can_hold_na + noop + not can_hold_element + + obj = frame_or_series([1, 2, 3], dtype=np.int64) + + msg = "The 'downcast' keyword in fillna" + with tm.assert_produces_warning(FutureWarning, match=msg): + # GH#40988 + res = obj.fillna("foo", downcast=np.dtype(np.int32)) + expected = obj.astype(np.int32) + tm.assert_equal(res, expected) + + obj2 = obj.astype(np.float64) + with tm.assert_produces_warning(FutureWarning, match=msg): + res2 = obj2.fillna("foo", downcast="infer") + expected2 = obj # get back int64 + tm.assert_equal(res2, expected2) + + with tm.assert_produces_warning(FutureWarning, match=msg): + # GH#40988 + res3 = obj2.fillna("foo", downcast=np.dtype(np.int32)) + tm.assert_equal(res3, expected) + + @pytest.mark.parametrize("columns", [["A", "A", "B"], ["A", "A"]]) + def test_fillna_dictlike_value_duplicate_colnames(self, columns): + # GH#43476 + df = DataFrame(np.nan, index=[0, 1], columns=columns) + with tm.assert_produces_warning(None): + result = df.fillna({"A": 0}) + + expected = df.copy() + expected["A"] = 0.0 + tm.assert_frame_equal(result, expected) + + def test_fillna_dtype_conversion(self, using_infer_string): + # make sure that fillna on an empty frame works + df = DataFrame(index=["A", "B", "C"], columns=[1, 2, 3, 4, 5]) + result = df.dtypes + expected = Series([np.dtype("object")] * 5, index=[1, 2, 3, 4, 5]) + tm.assert_series_equal(result, expected) + + msg = "Downcasting object dtype arrays" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.fillna(1) + expected = DataFrame(1, index=["A", "B", "C"], columns=[1, 2, 3, 4, 5]) + tm.assert_frame_equal(result, expected) + + # empty block + df = DataFrame(index=range(3), columns=["A", "B"], dtype="float64") + result = df.fillna("nan") + expected = DataFrame("nan", index=range(3), columns=["A", "B"], dtype=object) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("val", ["", 1, np.nan, 1.0]) + def test_fillna_dtype_conversion_equiv_replace(self, val): + df = DataFrame({"A": [1, np.nan], "B": [1.0, 2.0]}) + expected = df.replace(np.nan, val) + result = df.fillna(val) + tm.assert_frame_equal(result, expected) + + def test_fillna_datetime_columns(self): + # GH#7095 + df = DataFrame( + { + "A": [-1, -2, np.nan], + "B": date_range("20130101", periods=3), + "C": ["foo", "bar", None], + "D": ["foo2", "bar2", None], + }, + index=date_range("20130110", periods=3), + ) + result = df.fillna("?") + expected = DataFrame( + { + "A": [-1, -2, "?"], + "B": date_range("20130101", periods=3), + "C": ["foo", "bar", "?"], + "D": ["foo2", "bar2", "?"], + }, + index=date_range("20130110", periods=3), + ) + tm.assert_frame_equal(result, expected) + + df = DataFrame( + { + "A": [-1, -2, np.nan], + "B": [Timestamp("2013-01-01"), Timestamp("2013-01-02"), NaT], + "C": ["foo", "bar", None], + "D": ["foo2", "bar2", None], + }, + index=date_range("20130110", periods=3), + ) + result = df.fillna("?") + expected = DataFrame( + { + "A": [-1, -2, "?"], + "B": [Timestamp("2013-01-01"), Timestamp("2013-01-02"), "?"], + "C": ["foo", "bar", "?"], + "D": ["foo2", "bar2", "?"], + }, + index=date_range("20130110", periods=3), + ) + tm.assert_frame_equal(result, expected) + + def test_ffill(self, datetime_frame): + datetime_frame.loc[datetime_frame.index[:5], "A"] = np.nan + datetime_frame.loc[datetime_frame.index[-5:], "A"] = np.nan + + msg = "DataFrame.fillna with 'method' is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + alt = datetime_frame.fillna(method="ffill") + tm.assert_frame_equal(datetime_frame.ffill(), alt) + + def test_bfill(self, datetime_frame): + datetime_frame.loc[datetime_frame.index[:5], "A"] = np.nan + datetime_frame.loc[datetime_frame.index[-5:], "A"] = np.nan + + msg = "DataFrame.fillna with 'method' is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + alt = datetime_frame.fillna(method="bfill") + + tm.assert_frame_equal(datetime_frame.bfill(), alt) + + def test_frame_pad_backfill_limit(self): + index = np.arange(10) + df = DataFrame(np.random.default_rng(2).standard_normal((10, 4)), index=index) + + result = df[:2].reindex(index, method="pad", limit=5) + + msg = "DataFrame.fillna with 'method' is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = df[:2].reindex(index).fillna(method="pad") + expected.iloc[-3:] = np.nan + tm.assert_frame_equal(result, expected) + + result = df[-2:].reindex(index, method="backfill", limit=5) + + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = df[-2:].reindex(index).fillna(method="backfill") + expected.iloc[:3] = np.nan + tm.assert_frame_equal(result, expected) + + def test_frame_fillna_limit(self): + index = np.arange(10) + df = DataFrame(np.random.default_rng(2).standard_normal((10, 4)), index=index) + + result = df[:2].reindex(index) + msg = "DataFrame.fillna with 'method' is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = result.fillna(method="pad", limit=5) + + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = df[:2].reindex(index).fillna(method="pad") + expected.iloc[-3:] = np.nan + tm.assert_frame_equal(result, expected) + + result = df[-2:].reindex(index) + with tm.assert_produces_warning(FutureWarning, match=msg): + result = result.fillna(method="backfill", limit=5) + + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = df[-2:].reindex(index).fillna(method="backfill") + expected.iloc[:3] = np.nan + tm.assert_frame_equal(result, expected) + + def test_fillna_skip_certain_blocks(self): + # don't try to fill boolean, int blocks + + df = DataFrame(np.random.default_rng(2).standard_normal((10, 4)).astype(int)) + + # it works! + df.fillna(np.nan) + + @pytest.mark.parametrize("type", [int, float]) + def test_fillna_positive_limit(self, type): + df = DataFrame(np.random.default_rng(2).standard_normal((10, 4))).astype(type) + + msg = "Limit must be greater than 0" + with pytest.raises(ValueError, match=msg): + df.fillna(0, limit=-5) + + @pytest.mark.parametrize("type", [int, float]) + def test_fillna_integer_limit(self, type): + df = DataFrame(np.random.default_rng(2).standard_normal((10, 4))).astype(type) + + msg = "Limit must be an integer" + with pytest.raises(ValueError, match=msg): + df.fillna(0, limit=0.5) + + def test_fillna_inplace(self): + df = DataFrame(np.random.default_rng(2).standard_normal((10, 4))) + df.loc[:4, 1] = np.nan + df.loc[-4:, 3] = np.nan + + expected = df.fillna(value=0) + assert expected is not df + + df.fillna(value=0, inplace=True) + tm.assert_frame_equal(df, expected) + + expected = df.fillna(value={0: 0}, inplace=True) + assert expected is None + + df.loc[:4, 1] = np.nan + df.loc[-4:, 3] = np.nan + msg = "DataFrame.fillna with 'method' is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = df.fillna(method="ffill") + assert expected is not df + + with tm.assert_produces_warning(FutureWarning, match=msg): + df.fillna(method="ffill", inplace=True) + tm.assert_frame_equal(df, expected) + + def test_fillna_dict_series(self): + df = DataFrame( + { + "a": [np.nan, 1, 2, np.nan, np.nan], + "b": [1, 2, 3, np.nan, np.nan], + "c": [np.nan, 1, 2, 3, 4], + } + ) + + result = df.fillna({"a": 0, "b": 5}) + + expected = df.copy() + expected["a"] = expected["a"].fillna(0) + expected["b"] = expected["b"].fillna(5) + tm.assert_frame_equal(result, expected) + + # it works + result = df.fillna({"a": 0, "b": 5, "d": 7}) + + # Series treated same as dict + result = df.fillna(df.max()) + expected = df.fillna(df.max().to_dict()) + tm.assert_frame_equal(result, expected) + + # disable this for now + with pytest.raises(NotImplementedError, match="column by column"): + df.fillna(df.max(1), axis=1) + + def test_fillna_dataframe(self): + # GH#8377 + df = DataFrame( + { + "a": [np.nan, 1, 2, np.nan, np.nan], + "b": [1, 2, 3, np.nan, np.nan], + "c": [np.nan, 1, 2, 3, 4], + }, + index=list("VWXYZ"), + ) + + # df2 may have different index and columns + df2 = DataFrame( + { + "a": [np.nan, 10, 20, 30, 40], + "b": [50, 60, 70, 80, 90], + "foo": ["bar"] * 5, + }, + index=list("VWXuZ"), + ) + + result = df.fillna(df2) + + # only those columns and indices which are shared get filled + expected = DataFrame( + { + "a": [np.nan, 1, 2, np.nan, 40], + "b": [1, 2, 3, np.nan, 90], + "c": [np.nan, 1, 2, 3, 4], + }, + index=list("VWXYZ"), + ) + + tm.assert_frame_equal(result, expected) + + def test_fillna_columns(self): + arr = np.random.default_rng(2).standard_normal((10, 10)) + arr[:, ::2] = np.nan + df = DataFrame(arr) + + msg = "DataFrame.fillna with 'method' is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.fillna(method="ffill", axis=1) + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = df.T.fillna(method="pad").T + tm.assert_frame_equal(result, expected) + + df.insert(6, "foo", 5) + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.fillna(method="ffill", axis=1) + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = df.astype(float).fillna(method="ffill", axis=1) + tm.assert_frame_equal(result, expected) + + def test_fillna_invalid_method(self, float_frame): + with pytest.raises(ValueError, match="ffil"): + float_frame.fillna(method="ffil") + + def test_fillna_invalid_value(self, float_frame): + # list + msg = '"value" parameter must be a scalar or dict, but you passed a "{}"' + with pytest.raises(TypeError, match=msg.format("list")): + float_frame.fillna([1, 2]) + # tuple + with pytest.raises(TypeError, match=msg.format("tuple")): + float_frame.fillna((1, 2)) + # frame with series + msg = ( + '"value" parameter must be a scalar, dict or Series, but you ' + 'passed a "DataFrame"' + ) + with pytest.raises(TypeError, match=msg): + float_frame.iloc[:, 0].fillna(float_frame) + + def test_fillna_col_reordering(self): + cols = ["COL." + str(i) for i in range(5, 0, -1)] + data = np.random.default_rng(2).random((20, 5)) + df = DataFrame(index=range(20), columns=cols, data=data) + msg = "DataFrame.fillna with 'method' is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + filled = df.fillna(method="ffill") + assert df.columns.tolist() == filled.columns.tolist() + + def test_fill_empty(self, float_frame): + df = float_frame.reindex(columns=[]) + result = df.fillna(value=0) + tm.assert_frame_equal(result, df) + + def test_fillna_downcast_dict(self): + # GH#40809 + df = DataFrame({"col1": [1, np.nan]}) + + msg = "The 'downcast' keyword in fillna" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.fillna({"col1": 2}, downcast={"col1": "int64"}) + expected = DataFrame({"col1": [1, 2]}) + tm.assert_frame_equal(result, expected) + + def test_fillna_with_columns_and_limit(self): + # GH40989 + df = DataFrame( + [ + [np.nan, 2, np.nan, 0], + [3, 4, np.nan, 1], + [np.nan, np.nan, np.nan, 5], + [np.nan, 3, np.nan, 4], + ], + columns=list("ABCD"), + ) + result = df.fillna(axis=1, value=100, limit=1) + result2 = df.fillna(axis=1, value=100, limit=2) + + expected = DataFrame( + { + "A": Series([100, 3, 100, 100], dtype="float64"), + "B": [2, 4, np.nan, 3], + "C": [np.nan, 100, np.nan, np.nan], + "D": Series([0, 1, 5, 4], dtype="float64"), + }, + index=[0, 1, 2, 3], + ) + expected2 = DataFrame( + { + "A": Series([100, 3, 100, 100], dtype="float64"), + "B": Series([2, 4, 100, 3], dtype="float64"), + "C": [100, 100, np.nan, 100], + "D": Series([0, 1, 5, 4], dtype="float64"), + }, + index=[0, 1, 2, 3], + ) + + tm.assert_frame_equal(result, expected) + tm.assert_frame_equal(result2, expected2) + + def test_fillna_datetime_inplace(self): + # GH#48863 + df = DataFrame( + { + "date1": to_datetime(["2018-05-30", None]), + "date2": to_datetime(["2018-09-30", None]), + } + ) + expected = df.copy() + df.fillna(np.nan, inplace=True) + tm.assert_frame_equal(df, expected) + + def test_fillna_inplace_with_columns_limit_and_value(self): + # GH40989 + df = DataFrame( + [ + [np.nan, 2, np.nan, 0], + [3, 4, np.nan, 1], + [np.nan, np.nan, np.nan, 5], + [np.nan, 3, np.nan, 4], + ], + columns=list("ABCD"), + ) + + expected = df.fillna(axis=1, value=100, limit=1) + assert expected is not df + + df.fillna(axis=1, value=100, limit=1, inplace=True) + tm.assert_frame_equal(df, expected) + + @td.skip_array_manager_invalid_test + @pytest.mark.parametrize("val", [-1, {"x": -1, "y": -1}]) + def test_inplace_dict_update_view( + self, val, using_copy_on_write, warn_copy_on_write + ): + # GH#47188 + df = DataFrame({"x": [np.nan, 2], "y": [np.nan, 2]}) + df_orig = df.copy() + result_view = df[:] + with tm.assert_cow_warning(warn_copy_on_write): + df.fillna(val, inplace=True) + expected = DataFrame({"x": [-1, 2.0], "y": [-1.0, 2]}) + tm.assert_frame_equal(df, expected) + if using_copy_on_write: + tm.assert_frame_equal(result_view, df_orig) + else: + tm.assert_frame_equal(result_view, expected) + + def test_single_block_df_with_horizontal_axis(self): + # GH 47713 + df = DataFrame( + { + "col1": [5, 0, np.nan, 10, np.nan], + "col2": [7, np.nan, np.nan, 5, 3], + "col3": [12, np.nan, 1, 2, 0], + "col4": [np.nan, 1, 1, np.nan, 18], + } + ) + result = df.fillna(50, limit=1, axis=1) + expected = DataFrame( + [ + [5.0, 7.0, 12.0, 50.0], + [0.0, 50.0, np.nan, 1.0], + [50.0, np.nan, 1.0, 1.0], + [10.0, 5.0, 2.0, 50.0], + [50.0, 3.0, 0.0, 18.0], + ], + columns=["col1", "col2", "col3", "col4"], + ) + tm.assert_frame_equal(result, expected) + + def test_fillna_with_multi_index_frame(self): + # GH 47649 + pdf = DataFrame( + { + ("x", "a"): [np.nan, 2.0, 3.0], + ("x", "b"): [1.0, 2.0, np.nan], + ("y", "c"): [1.0, 2.0, np.nan], + } + ) + expected = DataFrame( + { + ("x", "a"): [-1.0, 2.0, 3.0], + ("x", "b"): [1.0, 2.0, -1.0], + ("y", "c"): [1.0, 2.0, np.nan], + } + ) + tm.assert_frame_equal(pdf.fillna({"x": -1}), expected) + tm.assert_frame_equal(pdf.fillna({"x": -1, ("x", "b"): -2}), expected) + + expected = DataFrame( + { + ("x", "a"): [-1.0, 2.0, 3.0], + ("x", "b"): [1.0, 2.0, -2.0], + ("y", "c"): [1.0, 2.0, np.nan], + } + ) + tm.assert_frame_equal(pdf.fillna({("x", "b"): -2, "x": -1}), expected) + + +def test_fillna_nonconsolidated_frame(): + # https://github.com/pandas-dev/pandas/issues/36495 + df = DataFrame( + [ + [1, 1, 1, 1.0], + [2, 2, 2, 2.0], + [3, 3, 3, 3.0], + ], + columns=["i1", "i2", "i3", "f1"], + ) + df_nonconsol = df.pivot(index="i1", columns="i2") + result = df_nonconsol.fillna(0) + assert result.isna().sum().sum() == 0 + + +def test_fillna_nones_inplace(): + # GH 48480 + df = DataFrame( + [[None, None], [None, None]], + columns=["A", "B"], + ) + msg = "Downcasting object dtype arrays" + with tm.assert_produces_warning(FutureWarning, match=msg): + df.fillna(value={"A": 1, "B": 2}, inplace=True) + + expected = DataFrame([[1, 2], [1, 2]], columns=["A", "B"]) + tm.assert_frame_equal(df, expected) + + +@pytest.mark.parametrize("func", ["pad", "backfill"]) +def test_pad_backfill_deprecated(func): + # GH#33396 + df = DataFrame({"a": [1, 2, 3]}) + with tm.assert_produces_warning(FutureWarning): + getattr(df, func)() + + +@pytest.mark.parametrize( + "data, expected_data, method, kwargs", + ( + ( + [np.nan, np.nan, 3, np.nan, np.nan, np.nan, 7, np.nan, np.nan], + [np.nan, np.nan, 3.0, 3.0, 3.0, 3.0, 7.0, np.nan, np.nan], + "ffill", + {"limit_area": "inside"}, + ), + ( + [np.nan, np.nan, 3, np.nan, np.nan, np.nan, 7, np.nan, np.nan], + [np.nan, np.nan, 3.0, 3.0, np.nan, np.nan, 7.0, np.nan, np.nan], + "ffill", + {"limit_area": "inside", "limit": 1}, + ), + ( + [np.nan, np.nan, 3, np.nan, np.nan, np.nan, 7, np.nan, np.nan], + [np.nan, np.nan, 3.0, np.nan, np.nan, np.nan, 7.0, 7.0, 7.0], + "ffill", + {"limit_area": "outside"}, + ), + ( + [np.nan, np.nan, 3, np.nan, np.nan, np.nan, 7, np.nan, np.nan], + [np.nan, np.nan, 3.0, np.nan, np.nan, np.nan, 7.0, 7.0, np.nan], + "ffill", + {"limit_area": "outside", "limit": 1}, + ), + ( + [np.nan, np.nan, np.nan, np.nan, np.nan, np.nan, np.nan], + [np.nan, np.nan, np.nan, np.nan, np.nan, np.nan, np.nan], + "ffill", + {"limit_area": "outside", "limit": 1}, + ), + ( + range(5), + range(5), + "ffill", + {"limit_area": "outside", "limit": 1}, + ), + ( + [np.nan, np.nan, 3, np.nan, np.nan, np.nan, 7, np.nan, np.nan], + [np.nan, np.nan, 3.0, 7.0, 7.0, 7.0, 7.0, np.nan, np.nan], + "bfill", + {"limit_area": "inside"}, + ), + ( + [np.nan, np.nan, 3, np.nan, np.nan, np.nan, 7, np.nan, np.nan], + [np.nan, np.nan, 3.0, np.nan, np.nan, 7.0, 7.0, np.nan, np.nan], + "bfill", + {"limit_area": "inside", "limit": 1}, + ), + ( + [np.nan, np.nan, 3, np.nan, np.nan, np.nan, 7, np.nan, np.nan], + [3.0, 3.0, 3.0, np.nan, np.nan, np.nan, 7.0, np.nan, np.nan], + "bfill", + {"limit_area": "outside"}, + ), + ( + [np.nan, np.nan, 3, np.nan, np.nan, np.nan, 7, np.nan, np.nan], + [np.nan, 3.0, 3.0, np.nan, np.nan, np.nan, 7.0, np.nan, np.nan], + "bfill", + {"limit_area": "outside", "limit": 1}, + ), + ), +) +def test_ffill_bfill_limit_area(data, expected_data, method, kwargs): + # GH#56492 + df = DataFrame(data) + expected = DataFrame(expected_data) + result = getattr(df, method)(**kwargs) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_filter.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_filter.py new file mode 100644 index 0000000000000000000000000000000000000000..9d5e6876bb08c2929e6a54c18b865e2720c1424d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_filter.py @@ -0,0 +1,153 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import DataFrame +import pandas._testing as tm + + +class TestDataFrameFilter: + def test_filter(self, float_frame, float_string_frame): + # Items + filtered = float_frame.filter(["A", "B", "E"]) + assert len(filtered.columns) == 2 + assert "E" not in filtered + + filtered = float_frame.filter(["A", "B", "E"], axis="columns") + assert len(filtered.columns) == 2 + assert "E" not in filtered + + # Other axis + idx = float_frame.index[0:4] + filtered = float_frame.filter(idx, axis="index") + expected = float_frame.reindex(index=idx) + tm.assert_frame_equal(filtered, expected) + + # like + fcopy = float_frame.copy() + fcopy["AA"] = 1 + + filtered = fcopy.filter(like="A") + assert len(filtered.columns) == 2 + assert "AA" in filtered + + # like with ints in column names + df = DataFrame(0.0, index=[0, 1, 2], columns=[0, 1, "_A", "_B"]) + filtered = df.filter(like="_") + assert len(filtered.columns) == 2 + + # regex with ints in column names + # from PR #10384 + df = DataFrame(0.0, index=[0, 1, 2], columns=["A1", 1, "B", 2, "C"]) + expected = DataFrame( + 0.0, index=[0, 1, 2], columns=pd.Index([1, 2], dtype=object) + ) + filtered = df.filter(regex="^[0-9]+$") + tm.assert_frame_equal(filtered, expected) + + expected = DataFrame(0.0, index=[0, 1, 2], columns=[0, "0", 1, "1"]) + # shouldn't remove anything + filtered = expected.filter(regex="^[0-9]+$") + tm.assert_frame_equal(filtered, expected) + + # pass in None + with pytest.raises(TypeError, match="Must pass"): + float_frame.filter() + with pytest.raises(TypeError, match="Must pass"): + float_frame.filter(items=None) + with pytest.raises(TypeError, match="Must pass"): + float_frame.filter(axis=1) + + # test mutually exclusive arguments + with pytest.raises(TypeError, match="mutually exclusive"): + float_frame.filter(items=["one", "three"], regex="e$", like="bbi") + with pytest.raises(TypeError, match="mutually exclusive"): + float_frame.filter(items=["one", "three"], regex="e$", axis=1) + with pytest.raises(TypeError, match="mutually exclusive"): + float_frame.filter(items=["one", "three"], regex="e$") + with pytest.raises(TypeError, match="mutually exclusive"): + float_frame.filter(items=["one", "three"], like="bbi", axis=0) + with pytest.raises(TypeError, match="mutually exclusive"): + float_frame.filter(items=["one", "three"], like="bbi") + + # objects + filtered = float_string_frame.filter(like="foo") + assert "foo" in filtered + + # unicode columns, won't ascii-encode + df = float_frame.rename(columns={"B": "\u2202"}) + filtered = df.filter(like="C") + assert "C" in filtered + + def test_filter_regex_search(self, float_frame): + fcopy = float_frame.copy() + fcopy["AA"] = 1 + + # regex + filtered = fcopy.filter(regex="[A]+") + assert len(filtered.columns) == 2 + assert "AA" in filtered + + # doesn't have to be at beginning + df = DataFrame( + {"aBBa": [1, 2], "BBaBB": [1, 2], "aCCa": [1, 2], "aCCaBB": [1, 2]} + ) + + result = df.filter(regex="BB") + exp = df[[x for x in df.columns if "BB" in x]] + tm.assert_frame_equal(result, exp) + + @pytest.mark.parametrize( + "name,expected", + [ + ("a", DataFrame({"a": [1, 2]})), + ("a", DataFrame({"a": [1, 2]})), + ("あ", DataFrame({"あ": [3, 4]})), + ], + ) + def test_filter_unicode(self, name, expected): + # GH13101 + df = DataFrame({"a": [1, 2], "あ": [3, 4]}) + + tm.assert_frame_equal(df.filter(like=name), expected) + tm.assert_frame_equal(df.filter(regex=name), expected) + + @pytest.mark.parametrize("name", ["a", "a"]) + def test_filter_bytestring(self, name): + # GH13101 + df = DataFrame({b"a": [1, 2], b"b": [3, 4]}) + expected = DataFrame({b"a": [1, 2]}) + + tm.assert_frame_equal(df.filter(like=name), expected) + tm.assert_frame_equal(df.filter(regex=name), expected) + + def test_filter_corner(self): + empty = DataFrame() + + result = empty.filter([]) + tm.assert_frame_equal(result, empty) + + result = empty.filter(like="foo") + tm.assert_frame_equal(result, empty) + + def test_filter_regex_non_string(self): + # GH#5798 trying to filter on non-string columns should drop, + # not raise + df = DataFrame(np.random.default_rng(2).random((3, 2)), columns=["STRING", 123]) + result = df.filter(regex="STRING") + expected = df[["STRING"]] + tm.assert_frame_equal(result, expected) + + def test_filter_keep_order(self): + # GH#54980 + df = DataFrame({"A": [1, 2, 3], "B": [4, 5, 6]}) + result = df.filter(items=["B", "A"]) + expected = df[["B", "A"]] + tm.assert_frame_equal(result, expected) + + def test_filter_different_dtype(self): + # GH#54980 + df = DataFrame({1: [1, 2, 3], 2: [4, 5, 6]}) + result = df.filter(items=["B", "A"]) + expected = df[[]] + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_first_and_last.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_first_and_last.py new file mode 100644 index 0000000000000000000000000000000000000000..212e56442ee07460d61c4ef0b790e7bb193f9b3e --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_first_and_last.py @@ -0,0 +1,143 @@ +""" +Note: includes tests for `last` +""" +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + DataFrame, + Index, + bdate_range, + date_range, +) +import pandas._testing as tm + +deprecated_msg = "first is deprecated" +last_deprecated_msg = "last is deprecated" + + +class TestFirst: + def test_first_subset(self, frame_or_series): + ts = DataFrame( + np.random.default_rng(2).standard_normal((100, 4)), + columns=Index(list("ABCD"), dtype=object), + index=date_range("2000-01-01", periods=100, freq="12h"), + ) + ts = tm.get_obj(ts, frame_or_series) + with tm.assert_produces_warning(FutureWarning, match=deprecated_msg): + result = ts.first("10d") + assert len(result) == 20 + + ts = DataFrame( + np.random.default_rng(2).standard_normal((100, 4)), + columns=Index(list("ABCD"), dtype=object), + index=date_range("2000-01-01", periods=100, freq="D"), + ) + ts = tm.get_obj(ts, frame_or_series) + with tm.assert_produces_warning(FutureWarning, match=deprecated_msg): + result = ts.first("10d") + assert len(result) == 10 + + with tm.assert_produces_warning(FutureWarning, match=deprecated_msg): + result = ts.first("3ME") + expected = ts[:"3/31/2000"] + tm.assert_equal(result, expected) + + with tm.assert_produces_warning(FutureWarning, match=deprecated_msg): + result = ts.first("21D") + expected = ts[:21] + tm.assert_equal(result, expected) + + with tm.assert_produces_warning(FutureWarning, match=deprecated_msg): + result = ts[:0].first("3ME") + tm.assert_equal(result, ts[:0]) + + def test_first_last_raises(self, frame_or_series): + # GH#20725 + obj = DataFrame([[1, 2, 3], [4, 5, 6]]) + obj = tm.get_obj(obj, frame_or_series) + + msg = "'first' only supports a DatetimeIndex index" + with tm.assert_produces_warning( + FutureWarning, match=deprecated_msg + ), pytest.raises( + TypeError, match=msg + ): # index is not a DatetimeIndex + obj.first("1D") + + msg = "'last' only supports a DatetimeIndex index" + with tm.assert_produces_warning( + FutureWarning, match=last_deprecated_msg + ), pytest.raises( + TypeError, match=msg + ): # index is not a DatetimeIndex + obj.last("1D") + + def test_last_subset(self, frame_or_series): + ts = DataFrame( + np.random.default_rng(2).standard_normal((100, 4)), + columns=Index(list("ABCD"), dtype=object), + index=date_range("2000-01-01", periods=100, freq="12h"), + ) + ts = tm.get_obj(ts, frame_or_series) + with tm.assert_produces_warning(FutureWarning, match=last_deprecated_msg): + result = ts.last("10d") + assert len(result) == 20 + + ts = DataFrame( + np.random.default_rng(2).standard_normal((30, 4)), + columns=Index(list("ABCD"), dtype=object), + index=date_range("2000-01-01", periods=30, freq="D"), + ) + ts = tm.get_obj(ts, frame_or_series) + with tm.assert_produces_warning(FutureWarning, match=last_deprecated_msg): + result = ts.last("10d") + assert len(result) == 10 + + with tm.assert_produces_warning(FutureWarning, match=last_deprecated_msg): + result = ts.last("21D") + expected = ts["2000-01-10":] + tm.assert_equal(result, expected) + + with tm.assert_produces_warning(FutureWarning, match=last_deprecated_msg): + result = ts.last("21D") + expected = ts[-21:] + tm.assert_equal(result, expected) + + with tm.assert_produces_warning(FutureWarning, match=last_deprecated_msg): + result = ts[:0].last("3ME") + tm.assert_equal(result, ts[:0]) + + @pytest.mark.parametrize("start, periods", [("2010-03-31", 1), ("2010-03-30", 2)]) + def test_first_with_first_day_last_of_month(self, frame_or_series, start, periods): + # GH#29623 + x = frame_or_series([1] * 100, index=bdate_range(start, periods=100)) + with tm.assert_produces_warning(FutureWarning, match=deprecated_msg): + result = x.first("1ME") + expected = frame_or_series( + [1] * periods, index=bdate_range(start, periods=periods) + ) + tm.assert_equal(result, expected) + + def test_first_with_first_day_end_of_frq_n_greater_one(self, frame_or_series): + # GH#29623 + x = frame_or_series([1] * 100, index=bdate_range("2010-03-31", periods=100)) + with tm.assert_produces_warning(FutureWarning, match=deprecated_msg): + result = x.first("2ME") + expected = frame_or_series( + [1] * 23, index=bdate_range("2010-03-31", "2010-04-30") + ) + tm.assert_equal(result, expected) + + def test_empty_not_input(self): + # GH#51032 + df = DataFrame(index=pd.DatetimeIndex([])) + with tm.assert_produces_warning(FutureWarning, match=last_deprecated_msg): + result = df.last(offset=1) + + with tm.assert_produces_warning(FutureWarning, match=deprecated_msg): + result = df.first(offset=1) + + tm.assert_frame_equal(df, result) + assert df is not result diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_first_valid_index.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_first_valid_index.py new file mode 100644 index 0000000000000000000000000000000000000000..2e27f1aa7170058be9cf267984da6d3e3338dc85 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_first_valid_index.py @@ -0,0 +1,78 @@ +""" +Includes test for last_valid_index. +""" +import numpy as np +import pytest + +from pandas import ( + DataFrame, + Index, + Series, + date_range, +) + + +class TestFirstValidIndex: + def test_first_valid_index_single_nan(self, frame_or_series): + # GH#9752 Series/DataFrame should both return None, not raise + obj = frame_or_series([np.nan]) + + assert obj.first_valid_index() is None + assert obj.iloc[:0].first_valid_index() is None + + @pytest.mark.parametrize( + "empty", [DataFrame(), Series(dtype=object), Series([], index=[], dtype=object)] + ) + def test_first_valid_index_empty(self, empty): + # GH#12800 + assert empty.last_valid_index() is None + assert empty.first_valid_index() is None + + @pytest.mark.parametrize( + "data,idx,expected_first,expected_last", + [ + ({"A": [1, 2, 3]}, [1, 1, 2], 1, 2), + ({"A": [1, 2, 3]}, [1, 2, 2], 1, 2), + ({"A": [1, 2, 3, 4]}, ["d", "d", "d", "d"], "d", "d"), + ({"A": [1, np.nan, 3]}, [1, 1, 2], 1, 2), + ({"A": [np.nan, np.nan, 3]}, [1, 1, 2], 2, 2), + ({"A": [1, np.nan, 3]}, [1, 2, 2], 1, 2), + ], + ) + def test_first_last_valid_frame(self, data, idx, expected_first, expected_last): + # GH#21441 + df = DataFrame(data, index=idx) + assert expected_first == df.first_valid_index() + assert expected_last == df.last_valid_index() + + @pytest.mark.parametrize( + "index", + [Index([str(i) for i in range(20)]), date_range("2020-01-01", periods=20)], + ) + def test_first_last_valid(self, index): + mat = np.random.default_rng(2).standard_normal(len(index)) + mat[:5] = np.nan + mat[-5:] = np.nan + + frame = DataFrame({"foo": mat}, index=index) + assert frame.first_valid_index() == frame.index[5] + assert frame.last_valid_index() == frame.index[-6] + + ser = frame["foo"] + assert ser.first_valid_index() == frame.index[5] + assert ser.last_valid_index() == frame.index[-6] + + @pytest.mark.parametrize( + "index", + [Index([str(i) for i in range(10)]), date_range("2020-01-01", periods=10)], + ) + def test_first_last_valid_all_nan(self, index): + # GH#17400: no valid entries + frame = DataFrame(np.nan, columns=["foo"], index=index) + + assert frame.last_valid_index() is None + assert frame.first_valid_index() is None + + ser = frame["foo"] + assert ser.first_valid_index() is None + assert ser.last_valid_index() is None diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_get_numeric_data.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_get_numeric_data.py new file mode 100644 index 0000000000000000000000000000000000000000..6d097e75f6703c277bd271dbd030293b459ec9ae --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_get_numeric_data.py @@ -0,0 +1,104 @@ +import numpy as np + +import pandas as pd +from pandas import ( + Categorical, + DataFrame, + Index, + Series, + Timestamp, +) +import pandas._testing as tm +from pandas.core.arrays import IntervalArray + + +class TestGetNumericData: + def test_get_numeric_data_preserve_dtype(self): + # get the numeric data + obj = DataFrame({"A": [1, "2", 3.0]}, columns=Index(["A"], dtype="object")) + result = obj._get_numeric_data() + expected = DataFrame(dtype=object, index=pd.RangeIndex(3), columns=[]) + tm.assert_frame_equal(result, expected) + + def test_get_numeric_data(self, using_infer_string): + datetime64name = np.dtype("M8[s]").name + objectname = np.dtype(np.object_).name + + df = DataFrame( + {"a": 1.0, "b": 2, "c": "foo", "f": Timestamp("20010102")}, + index=np.arange(10), + ) + result = df.dtypes + expected = Series( + [ + np.dtype("float64"), + np.dtype("int64"), + np.dtype(objectname) + if not using_infer_string + else pd.StringDtype(na_value=np.nan), + np.dtype(datetime64name), + ], + index=["a", "b", "c", "f"], + ) + tm.assert_series_equal(result, expected) + + df = DataFrame( + { + "a": 1.0, + "b": 2, + "c": "foo", + "d": np.array([1.0] * 10, dtype="float32"), + "e": np.array([1] * 10, dtype="int32"), + "f": np.array([1] * 10, dtype="int16"), + "g": Timestamp("20010102"), + }, + index=np.arange(10), + ) + + result = df._get_numeric_data() + expected = df.loc[:, ["a", "b", "d", "e", "f"]] + tm.assert_frame_equal(result, expected) + + only_obj = df.loc[:, ["c", "g"]] + result = only_obj._get_numeric_data() + expected = df.loc[:, []] + tm.assert_frame_equal(result, expected) + + df = DataFrame.from_dict({"a": [1, 2], "b": ["foo", "bar"], "c": [np.pi, np.e]}) + result = df._get_numeric_data() + expected = DataFrame.from_dict({"a": [1, 2], "c": [np.pi, np.e]}) + tm.assert_frame_equal(result, expected) + + df = result.copy() + result = df._get_numeric_data() + expected = df + tm.assert_frame_equal(result, expected) + + def test_get_numeric_data_mixed_dtype(self): + # numeric and object columns + + df = DataFrame( + { + "a": [1, 2, 3], + "b": [True, False, True], + "c": ["foo", "bar", "baz"], + "d": [None, None, None], + "e": [3.14, 0.577, 2.773], + } + ) + result = df._get_numeric_data() + tm.assert_index_equal(result.columns, Index(["a", "b", "e"])) + + def test_get_numeric_data_extension_dtype(self): + # GH#22290 + df = DataFrame( + { + "A": pd.array([-10, np.nan, 0, 10, 20, 30], dtype="Int64"), + "B": Categorical(list("abcabc")), + "C": pd.array([0, 1, 2, 3, np.nan, 5], dtype="UInt8"), + "D": IntervalArray.from_breaks(range(7)), + } + ) + result = df._get_numeric_data() + expected = df.loc[:, ["A", "C"]] + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_head_tail.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_head_tail.py new file mode 100644 index 0000000000000000000000000000000000000000..9363c4d79983f0530bc17666aec7ec8609fb93e4 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_head_tail.py @@ -0,0 +1,57 @@ +import numpy as np + +from pandas import DataFrame +import pandas._testing as tm + + +def test_head_tail_generic(index, frame_or_series): + # GH#5370 + + ndim = 2 if frame_or_series is DataFrame else 1 + shape = (len(index),) * ndim + vals = np.random.default_rng(2).standard_normal(shape) + obj = frame_or_series(vals, index=index) + + tm.assert_equal(obj.head(), obj.iloc[:5]) + tm.assert_equal(obj.tail(), obj.iloc[-5:]) + + # 0-len + tm.assert_equal(obj.head(0), obj.iloc[0:0]) + tm.assert_equal(obj.tail(0), obj.iloc[0:0]) + + # bounded + tm.assert_equal(obj.head(len(obj) + 1), obj) + tm.assert_equal(obj.tail(len(obj) + 1), obj) + + # neg index + tm.assert_equal(obj.head(-3), obj.head(len(index) - 3)) + tm.assert_equal(obj.tail(-3), obj.tail(len(index) - 3)) + + +def test_head_tail(float_frame): + tm.assert_frame_equal(float_frame.head(), float_frame[:5]) + tm.assert_frame_equal(float_frame.tail(), float_frame[-5:]) + + tm.assert_frame_equal(float_frame.head(0), float_frame[0:0]) + tm.assert_frame_equal(float_frame.tail(0), float_frame[0:0]) + + tm.assert_frame_equal(float_frame.head(-1), float_frame[:-1]) + tm.assert_frame_equal(float_frame.tail(-1), float_frame[1:]) + tm.assert_frame_equal(float_frame.head(1), float_frame[:1]) + tm.assert_frame_equal(float_frame.tail(1), float_frame[-1:]) + # with a float index + df = float_frame.copy() + df.index = np.arange(len(float_frame)) + 0.1 + tm.assert_frame_equal(df.head(), df.iloc[:5]) + tm.assert_frame_equal(df.tail(), df.iloc[-5:]) + tm.assert_frame_equal(df.head(0), df[0:0]) + tm.assert_frame_equal(df.tail(0), df[0:0]) + tm.assert_frame_equal(df.head(-1), df.iloc[:-1]) + tm.assert_frame_equal(df.tail(-1), df.iloc[1:]) + + +def test_head_tail_empty(): + # test empty dataframe + empty_df = DataFrame() + tm.assert_frame_equal(empty_df.tail(), empty_df) + tm.assert_frame_equal(empty_df.head(), empty_df) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_infer_objects.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_infer_objects.py new file mode 100644 index 0000000000000000000000000000000000000000..a824a615b5c297c13afeedeba600c1a0ba986695 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_infer_objects.py @@ -0,0 +1,42 @@ +from datetime import datetime + +from pandas import DataFrame +import pandas._testing as tm + + +class TestInferObjects: + def test_infer_objects(self): + # GH#11221 + df = DataFrame( + { + "a": ["a", 1, 2, 3], + "b": ["b", 2.0, 3.0, 4.1], + "c": [ + "c", + datetime(2016, 1, 1), + datetime(2016, 1, 2), + datetime(2016, 1, 3), + ], + "d": [1, 2, 3, "d"], + }, + columns=["a", "b", "c", "d"], + ) + df = df.iloc[1:].infer_objects() + + assert df["a"].dtype == "int64" + assert df["b"].dtype == "float64" + assert df["c"].dtype == "M8[ns]" + assert df["d"].dtype == "object" + + expected = DataFrame( + { + "a": [1, 2, 3], + "b": [2.0, 3.0, 4.1], + "c": [datetime(2016, 1, 1), datetime(2016, 1, 2), datetime(2016, 1, 3)], + "d": [2, 3, "d"], + }, + columns=["a", "b", "c", "d"], + ) + # reconstruct frame to verify inference is same + result = df.reset_index(drop=True) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_info.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_info.py new file mode 100644 index 0000000000000000000000000000000000000000..c2d15e5ae88e83b9e2306ba3c4bb4435a739944e --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_info.py @@ -0,0 +1,589 @@ +from io import StringIO +import re +from string import ascii_uppercase +import sys +import textwrap + +import numpy as np +import pytest + +from pandas._config import using_string_dtype + +from pandas.compat import ( + HAS_PYARROW, + IS64, + PYPY, + is_platform_arm, +) + +from pandas import ( + CategoricalIndex, + DataFrame, + Index, + MultiIndex, + Series, + date_range, + option_context, +) +import pandas._testing as tm +from pandas.util.version import Version + + +@pytest.fixture +def duplicate_columns_frame(): + """Dataframe with duplicate column names.""" + return DataFrame( + np.random.default_rng(2).standard_normal((1500, 4)), + columns=["a", "a", "b", "b"], + ) + + +def test_info_empty(): + # GH #45494 + df = DataFrame() + buf = StringIO() + df.info(buf=buf) + result = buf.getvalue() + expected = textwrap.dedent( + """\ + + RangeIndex: 0 entries + Empty DataFrame\n""" + ) + assert result == expected + + +def test_info_categorical_column_smoke_test(): + n = 2500 + df = DataFrame({"int64": np.random.default_rng(2).integers(100, size=n, dtype=int)}) + df["category"] = Series( + np.array(list("abcdefghij")).take( + np.random.default_rng(2).integers(0, 10, size=n, dtype=int) + ) + ).astype("category") + df.isna() + buf = StringIO() + df.info(buf=buf) + + df2 = df[df["category"] == "d"] + buf = StringIO() + df2.info(buf=buf) + + +@pytest.mark.parametrize( + "fixture_func_name", + [ + "int_frame", + "float_frame", + "datetime_frame", + "duplicate_columns_frame", + "float_string_frame", + ], +) +def test_info_smoke_test(fixture_func_name, request): + frame = request.getfixturevalue(fixture_func_name) + buf = StringIO() + frame.info(buf=buf) + result = buf.getvalue().splitlines() + assert len(result) > 10 + + buf = StringIO() + frame.info(buf=buf, verbose=False) + + +def test_info_smoke_test2(float_frame): + # pretty useless test, used to be mixed into the repr tests + buf = StringIO() + float_frame.reindex(columns=["A"]).info(verbose=False, buf=buf) + float_frame.reindex(columns=["A", "B"]).info(verbose=False, buf=buf) + + # no columns or index + DataFrame().info(buf=buf) + + +@pytest.mark.parametrize( + "num_columns, max_info_columns, verbose", + [ + (10, 100, True), + (10, 11, True), + (10, 10, True), + (10, 9, False), + (10, 1, False), + ], +) +def test_info_default_verbose_selection(num_columns, max_info_columns, verbose): + frame = DataFrame(np.random.default_rng(2).standard_normal((5, num_columns))) + with option_context("display.max_info_columns", max_info_columns): + io_default = StringIO() + frame.info(buf=io_default) + result = io_default.getvalue() + + io_explicit = StringIO() + frame.info(buf=io_explicit, verbose=verbose) + expected = io_explicit.getvalue() + + assert result == expected + + +def test_info_verbose_check_header_separator_body(): + buf = StringIO() + size = 1001 + start = 5 + frame = DataFrame(np.random.default_rng(2).standard_normal((3, size))) + frame.info(verbose=True, buf=buf) + + res = buf.getvalue() + header = " # Column Dtype \n--- ------ ----- " + assert header in res + + frame.info(verbose=True, buf=buf) + buf.seek(0) + lines = buf.readlines() + assert len(lines) > 0 + + for i, line in enumerate(lines): + if start <= i < start + size: + line_nr = f" {i - start} " + assert line.startswith(line_nr) + + +@pytest.mark.parametrize( + "size, header_exp, separator_exp, first_line_exp, last_line_exp", + [ + ( + 4, + " # Column Non-Null Count Dtype ", + "--- ------ -------------- ----- ", + " 0 0 3 non-null float64", + " 3 3 3 non-null float64", + ), + ( + 11, + " # Column Non-Null Count Dtype ", + "--- ------ -------------- ----- ", + " 0 0 3 non-null float64", + " 10 10 3 non-null float64", + ), + ( + 101, + " # Column Non-Null Count Dtype ", + "--- ------ -------------- ----- ", + " 0 0 3 non-null float64", + " 100 100 3 non-null float64", + ), + ( + 1001, + " # Column Non-Null Count Dtype ", + "--- ------ -------------- ----- ", + " 0 0 3 non-null float64", + " 1000 1000 3 non-null float64", + ), + ( + 10001, + " # Column Non-Null Count Dtype ", + "--- ------ -------------- ----- ", + " 0 0 3 non-null float64", + " 10000 10000 3 non-null float64", + ), + ], +) +def test_info_verbose_with_counts_spacing( + size, header_exp, separator_exp, first_line_exp, last_line_exp +): + """Test header column, spacer, first line and last line in verbose mode.""" + frame = DataFrame(np.random.default_rng(2).standard_normal((3, size))) + with StringIO() as buf: + frame.info(verbose=True, show_counts=True, buf=buf) + all_lines = buf.getvalue().splitlines() + # Here table would contain only header, separator and table lines + # dframe repr, index summary, memory usage and dtypes are excluded + table = all_lines[3:-2] + header, separator, first_line, *rest, last_line = table + assert header == header_exp + assert separator == separator_exp + assert first_line == first_line_exp + assert last_line == last_line_exp + + +def test_info_memory(): + # https://github.com/pandas-dev/pandas/issues/21056 + df = DataFrame({"a": Series([1, 2], dtype="i8")}) + buf = StringIO() + df.info(buf=buf) + result = buf.getvalue() + bytes = float(df.memory_usage().sum()) + expected = textwrap.dedent( + f"""\ + + RangeIndex: 2 entries, 0 to 1 + Data columns (total 1 columns): + # Column Non-Null Count Dtype + --- ------ -------------- ----- + 0 a 2 non-null int64 + dtypes: int64(1) + memory usage: {bytes} bytes + """ + ) + assert result == expected + + +def test_info_wide(): + io = StringIO() + df = DataFrame(np.random.default_rng(2).standard_normal((5, 101))) + df.info(buf=io) + + io = StringIO() + df.info(buf=io, max_cols=101) + result = io.getvalue() + assert len(result.splitlines()) > 100 + + expected = result + with option_context("display.max_info_columns", 101): + io = StringIO() + df.info(buf=io) + result = io.getvalue() + assert result == expected + + +def test_info_duplicate_columns_shows_correct_dtypes(): + # GH11761 + io = StringIO() + frame = DataFrame([[1, 2.0]], columns=["a", "a"]) + frame.info(buf=io) + lines = io.getvalue().splitlines(True) + assert " 0 a 1 non-null int64 \n" == lines[5] + assert " 1 a 1 non-null float64\n" == lines[6] + + +def test_info_shows_column_dtypes(): + dtypes = [ + "int64", + "float64", + "datetime64[ns]", + "timedelta64[ns]", + "complex128", + "object", + "bool", + ] + data = {} + n = 10 + for i, dtype in enumerate(dtypes): + data[i] = np.random.default_rng(2).integers(2, size=n).astype(dtype) + df = DataFrame(data) + buf = StringIO() + df.info(buf=buf) + res = buf.getvalue() + header = ( + " # Column Non-Null Count Dtype \n" + "--- ------ -------------- ----- " + ) + assert header in res + for i, dtype in enumerate(dtypes): + name = f" {i:d} {i:d} {n:d} non-null {dtype}" + assert name in res + + +def test_info_max_cols(): + df = DataFrame(np.random.default_rng(2).standard_normal((10, 5))) + for len_, verbose in [(5, None), (5, False), (12, True)]: + # For verbose always ^ setting ^ summarize ^ full output + with option_context("max_info_columns", 4): + buf = StringIO() + df.info(buf=buf, verbose=verbose) + res = buf.getvalue() + assert len(res.strip().split("\n")) == len_ + + for len_, verbose in [(12, None), (5, False), (12, True)]: + # max_cols not exceeded + with option_context("max_info_columns", 5): + buf = StringIO() + df.info(buf=buf, verbose=verbose) + res = buf.getvalue() + assert len(res.strip().split("\n")) == len_ + + for len_, max_cols in [(12, 5), (5, 4)]: + # setting truncates + with option_context("max_info_columns", 4): + buf = StringIO() + df.info(buf=buf, max_cols=max_cols) + res = buf.getvalue() + assert len(res.strip().split("\n")) == len_ + + # setting wouldn't truncate + with option_context("max_info_columns", 5): + buf = StringIO() + df.info(buf=buf, max_cols=max_cols) + res = buf.getvalue() + assert len(res.strip().split("\n")) == len_ + + +def test_info_memory_usage(): + # Ensure memory usage is displayed, when asserted, on the last line + dtypes = [ + "int64", + "float64", + "datetime64[ns]", + "timedelta64[ns]", + "complex128", + "object", + "bool", + ] + data = {} + n = 10 + for i, dtype in enumerate(dtypes): + data[i] = np.random.default_rng(2).integers(2, size=n).astype(dtype) + df = DataFrame(data) + buf = StringIO() + + # display memory usage case + df.info(buf=buf, memory_usage=True) + res = buf.getvalue().splitlines() + assert "memory usage: " in res[-1] + + # do not display memory usage case + df.info(buf=buf, memory_usage=False) + res = buf.getvalue().splitlines() + assert "memory usage: " not in res[-1] + + df.info(buf=buf, memory_usage=True) + res = buf.getvalue().splitlines() + + # memory usage is a lower bound, so print it as XYZ+ MB + assert re.match(r"memory usage: [^+]+\+", res[-1]) + + df.iloc[:, :5].info(buf=buf, memory_usage=True) + res = buf.getvalue().splitlines() + + # excluded column with object dtype, so estimate is accurate + assert not re.match(r"memory usage: [^+]+\+", res[-1]) + + # Test a DataFrame with duplicate columns + dtypes = ["int64", "int64", "int64", "float64"] + data = {} + n = 100 + for i, dtype in enumerate(dtypes): + data[i] = np.random.default_rng(2).integers(2, size=n).astype(dtype) + df = DataFrame(data) + df.columns = dtypes + + df_with_object_index = DataFrame({"a": [1]}, index=Index(["foo"], dtype=object)) + df_with_object_index.info(buf=buf, memory_usage=True) + res = buf.getvalue().splitlines() + assert re.match(r"memory usage: [^+]+\+", res[-1]) + + df_with_object_index.info(buf=buf, memory_usage="deep") + res = buf.getvalue().splitlines() + assert re.match(r"memory usage: [^+]+$", res[-1]) + + # Ensure df size is as expected + # (cols * rows * bytes) + index size + df_size = df.memory_usage().sum() + exp_size = len(dtypes) * n * 8 + df.index.nbytes + assert df_size == exp_size + + # Ensure number of cols in memory_usage is the same as df + size_df = np.size(df.columns.values) + 1 # index=True; default + assert size_df == np.size(df.memory_usage()) + + # assert deep works only on object + assert df.memory_usage().sum() == df.memory_usage(deep=True).sum() + + # test for validity + DataFrame(1, index=["a"], columns=["A"]).memory_usage(index=True) + DataFrame(1, index=["a"], columns=["A"]).index.nbytes + df = DataFrame( + data=1, index=MultiIndex.from_product([["a"], range(1000)]), columns=["A"] + ) + df.index.nbytes + df.memory_usage(index=True) + df.index.values.nbytes + + mem = df.memory_usage(deep=True).sum() + assert mem > 0 + + +@pytest.mark.skipif(PYPY, reason="on PyPy deep=True doesn't change result") +def test_info_memory_usage_deep_not_pypy(): + df_with_object_index = DataFrame({"a": [1]}, index=Index(["foo"], dtype=object)) + assert ( + df_with_object_index.memory_usage(index=True, deep=True).sum() + > df_with_object_index.memory_usage(index=True).sum() + ) + + df_object = DataFrame({"a": Series(["a"], dtype=object)}) + assert df_object.memory_usage(deep=True).sum() > df_object.memory_usage().sum() + + +@pytest.mark.xfail(not PYPY, reason="on PyPy deep=True does not change result") +def test_info_memory_usage_deep_pypy(): + df_with_object_index = DataFrame({"a": [1]}, index=Index(["foo"], dtype=object)) + assert ( + df_with_object_index.memory_usage(index=True, deep=True).sum() + == df_with_object_index.memory_usage(index=True).sum() + ) + + df_object = DataFrame({"a": Series(["a"], dtype=object)}) + assert df_object.memory_usage(deep=True).sum() == df_object.memory_usage().sum() + + +@pytest.mark.skipif(PYPY, reason="PyPy getsizeof() fails by design") +def test_usage_via_getsizeof(): + df = DataFrame( + data=1, index=MultiIndex.from_product([["a"], range(1000)]), columns=["A"] + ) + mem = df.memory_usage(deep=True).sum() + # sys.getsizeof will call the .memory_usage with + # deep=True, and add on some GC overhead + diff = mem - sys.getsizeof(df) + assert abs(diff) < 100 + + +def test_info_memory_usage_qualified(using_infer_string): + buf = StringIO() + df = DataFrame(1, columns=list("ab"), index=[1, 2, 3]) + df.info(buf=buf) + assert "+" not in buf.getvalue() + + buf = StringIO() + df = DataFrame(1, columns=list("ab"), index=Index(list("ABC"), dtype=object)) + df.info(buf=buf) + assert "+" in buf.getvalue() + + buf = StringIO() + df = DataFrame(1, columns=list("ab"), index=Index(list("ABC"), dtype="str")) + df.info(buf=buf) + if using_infer_string and HAS_PYARROW: + assert "+" not in buf.getvalue() + else: + assert "+" in buf.getvalue() + + buf = StringIO() + df = DataFrame( + 1, columns=list("ab"), index=MultiIndex.from_product([range(3), range(3)]) + ) + df.info(buf=buf) + assert "+" not in buf.getvalue() + + buf = StringIO() + df = DataFrame( + 1, columns=list("ab"), index=MultiIndex.from_product([range(3), ["foo", "bar"]]) + ) + df.info(buf=buf) + if using_infer_string and HAS_PYARROW: + assert "+" not in buf.getvalue() + else: + assert "+" in buf.getvalue() + + +def test_info_memory_usage_bug_on_multiindex(): + # GH 14308 + # memory usage introspection should not materialize .values + + def memory_usage(f): + return f.memory_usage(deep=True).sum() + + N = 100 + M = len(ascii_uppercase) + index = MultiIndex.from_product( + [list(ascii_uppercase), date_range("20160101", periods=N)], + names=["id", "date"], + ) + df = DataFrame( + {"value": np.random.default_rng(2).standard_normal(N * M)}, index=index + ) + + unstacked = df.unstack("id") + assert df.values.nbytes == unstacked.values.nbytes + assert memory_usage(df) > memory_usage(unstacked) + + # high upper bound + assert memory_usage(unstacked) - memory_usage(df) < 2000 + + +def test_info_categorical(): + # GH14298 + idx = CategoricalIndex(["a", "b"]) + df = DataFrame(np.zeros((2, 2)), index=idx, columns=idx) + + buf = StringIO() + df.info(buf=buf) + + +@pytest.mark.xfail(not IS64, reason="GH 36579: fail on 32-bit system") +def test_info_int_columns(using_infer_string): + # GH#37245 + df = DataFrame({1: [1, 2], 2: [2, 3]}, index=["A", "B"]) + buf = StringIO() + df.info(show_counts=True, buf=buf) + result = buf.getvalue() + expected = textwrap.dedent( + f"""\ + + Index: 2 entries, A to B + Data columns (total 2 columns): + # Column Non-Null Count Dtype + --- ------ -------------- ----- + 0 1 2 non-null int64 + 1 2 2 non-null int64 + dtypes: int64(2) + memory usage: {'50.0' if using_infer_string and HAS_PYARROW else '48.0+'} bytes + """ + ) + assert result == expected + + +@pytest.mark.xfail(using_string_dtype(), reason="TODO(infer_string)") +def test_memory_usage_empty_no_warning(using_infer_string): + # GH#50066 + df = DataFrame(index=["a", "b"]) + with tm.assert_produces_warning(None): + result = df.memory_usage() + if using_infer_string and HAS_PYARROW: + value = 18 + else: + value = 16 if IS64 else 8 + expected = Series(value, index=["Index"]) + tm.assert_series_equal(result, expected) + + +@pytest.mark.single_cpu +def test_info_compute_numba(): + # GH#51922 + numba = pytest.importorskip("numba") + if Version(numba.__version__) == Version("0.61") and is_platform_arm(): + pytest.skip(f"Segfaults on ARM platforms with numba {numba.__version__}") + df = DataFrame([[1, 2], [3, 4]]) + + with option_context("compute.use_numba", True): + buf = StringIO() + df.info(buf=buf) + result = buf.getvalue() + + buf = StringIO() + df.info(buf=buf) + expected = buf.getvalue() + assert result == expected + + +@pytest.mark.parametrize( + "row, columns, show_counts, result", + [ + [20, 20, None, True], + [20, 20, True, True], + [20, 20, False, False], + [5, 5, None, False], + [5, 5, True, False], + [5, 5, False, False], + ], +) +def test_info_show_counts(row, columns, show_counts, result): + # Explicit cast to float to avoid implicit cast when setting nan + df = DataFrame(1, columns=range(10), index=range(10)).astype({1: "float"}) + df.iloc[1, 1] = np.nan + + with option_context( + "display.max_info_rows", row, "display.max_info_columns", columns + ): + with StringIO() as buf: + df.info(buf=buf, show_counts=show_counts) + assert ("non-null" in buf.getvalue()) is result diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_interpolate.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_interpolate.py new file mode 100644 index 0000000000000000000000000000000000000000..214c7cb229f56cad27680a26264a562223e9660c --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_interpolate.py @@ -0,0 +1,556 @@ +import numpy as np +import pytest + +from pandas._config import using_string_dtype + +from pandas.compat import WARNING_CHECK_DISABLED +from pandas.errors import ChainedAssignmentError +import pandas.util._test_decorators as td + +from pandas import ( + DataFrame, + NaT, + Series, + date_range, +) +import pandas._testing as tm + + +class TestDataFrameInterpolate: + def test_interpolate_complex(self): + # GH#53635 + ser = Series([complex("1+1j"), float("nan"), complex("2+2j")]) + assert ser.dtype.kind == "c" + + res = ser.interpolate() + expected = Series([ser[0], ser[0] * 1.5, ser[2]]) + tm.assert_series_equal(res, expected) + + df = ser.to_frame() + res = df.interpolate() + expected = expected.to_frame() + tm.assert_frame_equal(res, expected) + + def test_interpolate_datetimelike_values(self, frame_or_series): + # GH#11312, GH#51005 + orig = Series(date_range("2012-01-01", periods=5)) + ser = orig.copy() + ser[2] = NaT + + res = frame_or_series(ser).interpolate() + expected = frame_or_series(orig) + tm.assert_equal(res, expected) + + # datetime64tz cast + ser_tz = ser.dt.tz_localize("US/Pacific") + res_tz = frame_or_series(ser_tz).interpolate() + expected_tz = frame_or_series(orig.dt.tz_localize("US/Pacific")) + tm.assert_equal(res_tz, expected_tz) + + # timedelta64 cast + ser_td = ser - ser[0] + res_td = frame_or_series(ser_td).interpolate() + expected_td = frame_or_series(orig - orig[0]) + tm.assert_equal(res_td, expected_td) + + def test_interpolate_inplace(self, frame_or_series, using_array_manager, request): + # GH#44749 + if using_array_manager and frame_or_series is DataFrame: + mark = pytest.mark.xfail(reason=".values-based in-place check is invalid") + request.applymarker(mark) + + obj = frame_or_series([1, np.nan, 2]) + orig = obj.values + + obj.interpolate(inplace=True) + expected = frame_or_series([1, 1.5, 2]) + tm.assert_equal(obj, expected) + + # check we operated *actually* inplace + assert np.shares_memory(orig, obj.values) + assert orig.squeeze()[1] == 1.5 + + def test_interp_basic(self, using_copy_on_write, using_infer_string): + df = DataFrame( + { + "A": [1, 2, np.nan, 4], + "B": [1, 4, 9, np.nan], + "C": [1, 2, 3, 5], + "D": list("abcd"), + } + ) + expected = DataFrame( + { + "A": [1.0, 2.0, 3.0, 4.0], + "B": [1.0, 4.0, 9.0, 9.0], + "C": [1, 2, 3, 5], + "D": list("abcd"), + } + ) + if using_infer_string: + dtype = "str" if using_infer_string else "object" + msg = f"[Cc]annot interpolate with {dtype} dtype" + with pytest.raises(TypeError, match=msg): + df.interpolate() + return + + msg = "DataFrame.interpolate with object dtype" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.interpolate() + tm.assert_frame_equal(result, expected) + + # check we didn't operate inplace GH#45791 + cvalues = df["C"]._values + dvalues = df["D"].values + if using_copy_on_write: + assert np.shares_memory(cvalues, result["C"]._values) + assert np.shares_memory(dvalues, result["D"]._values) + else: + assert not np.shares_memory(cvalues, result["C"]._values) + assert not np.shares_memory(dvalues, result["D"]._values) + + with tm.assert_produces_warning(FutureWarning, match=msg): + res = df.interpolate(inplace=True) + assert res is None + tm.assert_frame_equal(df, expected) + + # check we DID operate inplace + assert tm.shares_memory(df["C"]._values, cvalues) + assert tm.shares_memory(df["D"]._values, dvalues) + + @pytest.mark.xfail( + using_string_dtype(), reason="interpolate doesn't work for string" + ) + def test_interp_basic_with_non_range_index(self, using_infer_string): + df = DataFrame( + { + "A": [1, 2, np.nan, 4], + "B": [1, 4, 9, np.nan], + "C": [1, 2, 3, 5], + "D": list("abcd"), + } + ) + + msg = "DataFrame.interpolate with object dtype" + warning = FutureWarning if not using_infer_string else None + with tm.assert_produces_warning(warning, match=msg): + result = df.set_index("C").interpolate() + expected = df.set_index("C") + expected.loc[3, "A"] = 3 + expected.loc[5, "B"] = 9 + tm.assert_frame_equal(result, expected) + + def test_interp_empty(self): + # https://github.com/pandas-dev/pandas/issues/35598 + df = DataFrame() + result = df.interpolate() + assert result is not df + expected = df + tm.assert_frame_equal(result, expected) + + def test_interp_bad_method(self): + df = DataFrame( + { + "A": [1, 2, np.nan, 4], + "B": [1, 4, 9, np.nan], + "C": [1, 2, 3, 5], + } + ) + msg = ( + r"method must be one of \['linear', 'time', 'index', 'values', " + r"'nearest', 'zero', 'slinear', 'quadratic', 'cubic', " + r"'barycentric', 'krogh', 'spline', 'polynomial', " + r"'from_derivatives', 'piecewise_polynomial', 'pchip', 'akima', " + r"'cubicspline'\]. Got 'not_a_method' instead." + ) + with pytest.raises(ValueError, match=msg): + df.interpolate(method="not_a_method") + + def test_interp_combo(self): + df = DataFrame( + { + "A": [1.0, 2.0, np.nan, 4.0], + "B": [1, 4, 9, np.nan], + "C": [1, 2, 3, 5], + "D": list("abcd"), + } + ) + + result = df["A"].interpolate() + expected = Series([1.0, 2.0, 3.0, 4.0], name="A") + tm.assert_series_equal(result, expected) + + msg = "The 'downcast' keyword in Series.interpolate is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df["A"].interpolate(downcast="infer") + expected = Series([1, 2, 3, 4], name="A") + tm.assert_series_equal(result, expected) + + def test_inerpolate_invalid_downcast(self): + # GH#53103 + df = DataFrame( + { + "A": [1.0, 2.0, np.nan, 4.0], + "B": [1, 4, 9, np.nan], + "C": [1, 2, 3, 5], + "D": list("abcd"), + } + ) + + msg = "downcast must be either None or 'infer'" + msg2 = "The 'downcast' keyword in DataFrame.interpolate is deprecated" + msg3 = "The 'downcast' keyword in Series.interpolate is deprecated" + with pytest.raises(ValueError, match=msg): + with tm.assert_produces_warning(FutureWarning, match=msg2): + df.interpolate(downcast="int64") + with pytest.raises(ValueError, match=msg): + with tm.assert_produces_warning(FutureWarning, match=msg3): + df["A"].interpolate(downcast="int64") + + def test_interp_nan_idx(self): + df = DataFrame({"A": [1, 2, np.nan, 4], "B": [np.nan, 2, 3, 4]}) + df = df.set_index("A") + msg = ( + "Interpolation with NaNs in the index has not been implemented. " + "Try filling those NaNs before interpolating." + ) + with pytest.raises(NotImplementedError, match=msg): + df.interpolate(method="values") + + def test_interp_various(self): + pytest.importorskip("scipy") + df = DataFrame( + {"A": [1, 2, np.nan, 4, 5, np.nan, 7], "C": [1, 2, 3, 5, 8, 13, 21]} + ) + df = df.set_index("C") + expected = df.copy() + result = df.interpolate(method="polynomial", order=1) + + expected.loc[3, "A"] = 2.66666667 + expected.loc[13, "A"] = 5.76923076 + tm.assert_frame_equal(result, expected) + + result = df.interpolate(method="cubic") + # GH #15662. + expected.loc[3, "A"] = 2.81547781 + expected.loc[13, "A"] = 5.52964175 + tm.assert_frame_equal(result, expected) + + result = df.interpolate(method="nearest") + expected.loc[3, "A"] = 2 + expected.loc[13, "A"] = 5 + tm.assert_frame_equal(result, expected, check_dtype=False) + + result = df.interpolate(method="quadratic") + expected.loc[3, "A"] = 2.82150771 + expected.loc[13, "A"] = 6.12648668 + tm.assert_frame_equal(result, expected) + + result = df.interpolate(method="slinear") + expected.loc[3, "A"] = 2.66666667 + expected.loc[13, "A"] = 5.76923077 + tm.assert_frame_equal(result, expected) + + result = df.interpolate(method="zero") + expected.loc[3, "A"] = 2.0 + expected.loc[13, "A"] = 5 + tm.assert_frame_equal(result, expected, check_dtype=False) + + def test_interp_alt_scipy(self): + pytest.importorskip("scipy") + df = DataFrame( + {"A": [1, 2, np.nan, 4, 5, np.nan, 7], "C": [1, 2, 3, 5, 8, 13, 21]} + ) + result = df.interpolate(method="barycentric") + expected = df.copy() + expected.loc[2, "A"] = 3 + expected.loc[5, "A"] = 6 + tm.assert_frame_equal(result, expected) + + msg = "The 'downcast' keyword in DataFrame.interpolate is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.interpolate(method="barycentric", downcast="infer") + tm.assert_frame_equal(result, expected.astype(np.int64)) + + result = df.interpolate(method="krogh") + expectedk = df.copy() + expectedk["A"] = expected["A"] + tm.assert_frame_equal(result, expectedk) + + result = df.interpolate(method="pchip") + expected.loc[2, "A"] = 3 + expected.loc[5, "A"] = 6.0 + + tm.assert_frame_equal(result, expected) + + def test_interp_rowwise(self): + df = DataFrame( + { + 0: [1, 2, np.nan, 4], + 1: [2, 3, 4, np.nan], + 2: [np.nan, 4, 5, 6], + 3: [4, np.nan, 6, 7], + 4: [1, 2, 3, 4], + } + ) + result = df.interpolate(axis=1) + expected = df.copy() + expected.loc[3, 1] = 5 + expected.loc[0, 2] = 3 + expected.loc[1, 3] = 3 + expected[4] = expected[4].astype(np.float64) + tm.assert_frame_equal(result, expected) + + result = df.interpolate(axis=1, method="values") + tm.assert_frame_equal(result, expected) + + result = df.interpolate(axis=0) + expected = df.interpolate() + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "axis_name, axis_number", + [ + pytest.param("rows", 0, id="rows_0"), + pytest.param("index", 0, id="index_0"), + pytest.param("columns", 1, id="columns_1"), + ], + ) + def test_interp_axis_names(self, axis_name, axis_number): + # GH 29132: test axis names + data = {0: [0, np.nan, 6], 1: [1, np.nan, 7], 2: [2, 5, 8]} + + df = DataFrame(data, dtype=np.float64) + result = df.interpolate(axis=axis_name, method="linear") + expected = df.interpolate(axis=axis_number, method="linear") + tm.assert_frame_equal(result, expected) + + def test_rowwise_alt(self): + df = DataFrame( + { + 0: [0, 0.5, 1.0, np.nan, 4, 8, np.nan, np.nan, 64], + 1: [1, 2, 3, 4, 3, 2, 1, 0, -1], + } + ) + df.interpolate(axis=0) + # TODO: assert something? + + @pytest.mark.parametrize( + "check_scipy", [False, pytest.param(True, marks=td.skip_if_no("scipy"))] + ) + def test_interp_leading_nans(self, check_scipy): + df = DataFrame( + {"A": [np.nan, np.nan, 0.5, 0.25, 0], "B": [np.nan, -3, -3.5, np.nan, -4]} + ) + result = df.interpolate() + expected = df.copy() + expected.loc[3, "B"] = -3.75 + tm.assert_frame_equal(result, expected) + + if check_scipy: + result = df.interpolate(method="polynomial", order=1) + tm.assert_frame_equal(result, expected) + + def test_interp_raise_on_only_mixed(self, axis): + df = DataFrame( + { + "A": [1, 2, np.nan, 4], + "B": ["a", "b", "c", "d"], + "C": [np.nan, 2, 5, 7], + "D": [np.nan, np.nan, 9, 9], + "E": [1, 2, 3, 4], + } + ) + msg = ( + "Cannot interpolate with all object-dtype columns " + "in the DataFrame. Try setting at least one " + "column to a numeric dtype." + ) + with pytest.raises(TypeError, match=msg): + df.astype("object").interpolate(axis=axis) + + def test_interp_raise_on_all_object_dtype(self): + # GH 22985 + df = DataFrame({"A": [1, 2, 3], "B": [4, 5, 6]}, dtype="object") + msg = ( + "Cannot interpolate with all object-dtype columns " + "in the DataFrame. Try setting at least one " + "column to a numeric dtype." + ) + with pytest.raises(TypeError, match=msg): + df.interpolate() + + def test_interp_inplace(self, using_copy_on_write): + df = DataFrame({"a": [1.0, 2.0, np.nan, 4.0]}) + expected = DataFrame({"a": [1.0, 2.0, 3.0, 4.0]}) + expected_cow = df.copy() + result = df.copy() + + if using_copy_on_write: + with tm.raises_chained_assignment_error(): + return_value = result["a"].interpolate(inplace=True) + assert return_value is None + tm.assert_frame_equal(result, expected_cow) + else: + with tm.assert_produces_warning( + FutureWarning if not WARNING_CHECK_DISABLED else None, + match="inplace method", + ): + return_value = result["a"].interpolate(inplace=True) + assert return_value is None + tm.assert_frame_equal(result, expected) + + result = df.copy() + msg = "The 'downcast' keyword in Series.interpolate is deprecated" + + if using_copy_on_write: + with tm.assert_produces_warning( + (FutureWarning, ChainedAssignmentError), match=msg + ): + return_value = result["a"].interpolate(inplace=True, downcast="infer") + assert return_value is None + tm.assert_frame_equal(result, expected_cow) + else: + with tm.assert_produces_warning(FutureWarning, match=msg): + return_value = result["a"].interpolate(inplace=True, downcast="infer") + assert return_value is None + tm.assert_frame_equal(result, expected.astype("int64")) + + def test_interp_inplace_row(self): + # GH 10395 + result = DataFrame( + {"a": [1.0, 2.0, 3.0, 4.0], "b": [np.nan, 2.0, 3.0, 4.0], "c": [3, 2, 2, 2]} + ) + expected = result.interpolate(method="linear", axis=1, inplace=False) + return_value = result.interpolate(method="linear", axis=1, inplace=True) + assert return_value is None + tm.assert_frame_equal(result, expected) + + def test_interp_ignore_all_good(self): + # GH + df = DataFrame( + { + "A": [1, 2, np.nan, 4], + "B": [1, 2, 3, 4], + "C": [1.0, 2.0, np.nan, 4.0], + "D": [1.0, 2.0, 3.0, 4.0], + } + ) + expected = DataFrame( + { + "A": np.array([1, 2, 3, 4], dtype="float64"), + "B": np.array([1, 2, 3, 4], dtype="int64"), + "C": np.array([1.0, 2.0, 3, 4.0], dtype="float64"), + "D": np.array([1.0, 2.0, 3.0, 4.0], dtype="float64"), + } + ) + + msg = "The 'downcast' keyword in DataFrame.interpolate is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.interpolate(downcast=None) + tm.assert_frame_equal(result, expected) + + # all good + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df[["B", "D"]].interpolate(downcast=None) + tm.assert_frame_equal(result, df[["B", "D"]]) + + def test_interp_time_inplace_axis(self): + # GH 9687 + periods = 5 + idx = date_range(start="2014-01-01", periods=periods) + data = np.random.default_rng(2).random((periods, periods)) + data[data < 0.5] = np.nan + expected = DataFrame(index=idx, columns=idx, data=data) + + result = expected.interpolate(axis=0, method="time") + return_value = expected.interpolate(axis=0, method="time", inplace=True) + assert return_value is None + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("axis_name, axis_number", [("index", 0), ("columns", 1)]) + def test_interp_string_axis(self, axis_name, axis_number): + # https://github.com/pandas-dev/pandas/issues/25190 + x = np.linspace(0, 100, 1000) + y = np.sin(x) + df = DataFrame( + data=np.tile(y, (10, 1)), index=np.arange(10), columns=x + ).reindex(columns=x * 1.005) + result = df.interpolate(method="linear", axis=axis_name) + expected = df.interpolate(method="linear", axis=axis_number) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("multiblock", [True, False]) + @pytest.mark.parametrize("method", ["ffill", "bfill", "pad"]) + def test_interp_fillna_methods( + self, request, axis, multiblock, method, using_array_manager + ): + # GH 12918 + if using_array_manager and axis in (1, "columns"): + # TODO(ArrayManager) support axis=1 + td.mark_array_manager_not_yet_implemented(request) + + df = DataFrame( + { + "A": [1.0, 2.0, 3.0, 4.0, np.nan, 5.0], + "B": [2.0, 4.0, 6.0, np.nan, 8.0, 10.0], + "C": [3.0, 6.0, 9.0, np.nan, np.nan, 30.0], + } + ) + if multiblock: + df["D"] = np.nan + df["E"] = 1.0 + + method2 = method if method != "pad" else "ffill" + expected = getattr(df, method2)(axis=axis) + msg = f"DataFrame.interpolate with method={method} is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.interpolate(method=method, axis=axis) + tm.assert_frame_equal(result, expected) + + def test_interpolate_empty_df(self): + # GH#53199 + df = DataFrame() + expected = df.copy() + result = df.interpolate(inplace=True) + assert result is None + tm.assert_frame_equal(df, expected) + + def test_interpolate_ea(self, any_int_ea_dtype): + # GH#55347 + df = DataFrame({"a": [1, None, None, None, 3]}, dtype=any_int_ea_dtype) + orig = df.copy() + result = df.interpolate(limit=2) + expected = DataFrame({"a": [1, 1.5, 2.0, None, 3]}, dtype="Float64") + tm.assert_frame_equal(result, expected) + tm.assert_frame_equal(df, orig) + + @pytest.mark.parametrize( + "dtype", + [ + "Float64", + "Float32", + pytest.param("float32[pyarrow]", marks=td.skip_if_no("pyarrow")), + pytest.param("float64[pyarrow]", marks=td.skip_if_no("pyarrow")), + ], + ) + def test_interpolate_ea_float(self, dtype): + # GH#55347 + df = DataFrame({"a": [1, None, None, None, 3]}, dtype=dtype) + orig = df.copy() + result = df.interpolate(limit=2) + expected = DataFrame({"a": [1, 1.5, 2.0, None, 3]}, dtype=dtype) + tm.assert_frame_equal(result, expected) + tm.assert_frame_equal(df, orig) + + @pytest.mark.parametrize( + "dtype", + ["int64", "uint64", "int32", "int16", "int8", "uint32", "uint16", "uint8"], + ) + def test_interpolate_arrow(self, dtype): + # GH#55347 + pytest.importorskip("pyarrow") + df = DataFrame({"a": [1, None, None, None, 3]}, dtype=dtype + "[pyarrow]") + result = df.interpolate(limit=2) + expected = DataFrame({"a": [1, 1.5, 2.0, None, 3]}, dtype="float64[pyarrow]") + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_is_homogeneous_dtype.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_is_homogeneous_dtype.py new file mode 100644 index 0000000000000000000000000000000000000000..1fe28cb8eb8562d116ed3306a7576a06c9c50450 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_is_homogeneous_dtype.py @@ -0,0 +1,58 @@ +import numpy as np +import pytest + +import pandas.util._test_decorators as td + +from pandas import ( + Categorical, + DataFrame, +) + +# _is_homogeneous_type always returns True for ArrayManager +pytestmark = td.skip_array_manager_invalid_test + + +@pytest.mark.parametrize( + "data, expected", + [ + # empty + (DataFrame(), True), + # multi-same + (DataFrame({"A": [1, 2], "B": [1, 2]}), True), + # multi-object + ( + DataFrame( + { + "A": np.array([1, 2], dtype=object), + "B": np.array(["a", "b"], dtype=object), + }, + dtype="object", + ), + True, + ), + # multi-extension + ( + DataFrame({"A": Categorical(["a", "b"]), "B": Categorical(["a", "b"])}), + True, + ), + # differ types + (DataFrame({"A": [1, 2], "B": [1.0, 2.0]}), False), + # differ sizes + ( + DataFrame( + { + "A": np.array([1, 2], dtype=np.int32), + "B": np.array([1, 2], dtype=np.int64), + } + ), + False, + ), + # multi-extension differ + ( + DataFrame({"A": Categorical(["a", "b"]), "B": Categorical(["b", "c"])}), + False, + ), + ], +) +def test_is_homogeneous_type(data, expected): + assert data._is_homogeneous_type is expected diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_isetitem.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_isetitem.py new file mode 100644 index 0000000000000000000000000000000000000000..69f394afb65191fe4cc52519fbc52959d2e1dd76 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_isetitem.py @@ -0,0 +1,50 @@ +import pytest + +from pandas import ( + DataFrame, + Series, +) +import pandas._testing as tm + + +class TestDataFrameSetItem: + def test_isetitem_ea_df(self): + # GH#49922 + df = DataFrame([[1, 2, 3], [4, 5, 6]]) + rhs = DataFrame([[11, 12], [13, 14]], dtype="Int64") + + df.isetitem([0, 1], rhs) + expected = DataFrame( + { + 0: Series([11, 13], dtype="Int64"), + 1: Series([12, 14], dtype="Int64"), + 2: [3, 6], + } + ) + tm.assert_frame_equal(df, expected) + + def test_isetitem_ea_df_scalar_indexer(self): + # GH#49922 + df = DataFrame([[1, 2, 3], [4, 5, 6]]) + rhs = DataFrame([[11], [13]], dtype="Int64") + + df.isetitem(2, rhs) + expected = DataFrame( + { + 0: [1, 4], + 1: [2, 5], + 2: Series([11, 13], dtype="Int64"), + } + ) + tm.assert_frame_equal(df, expected) + + def test_isetitem_dimension_mismatch(self): + # GH#51701 + df = DataFrame({"a": [1, 2], "b": [3, 4], "c": [5, 6]}) + value = df.copy() + with pytest.raises(ValueError, match="Got 2 positions but value has 3 columns"): + df.isetitem([1, 2], value) + + value = df.copy() + with pytest.raises(ValueError, match="Got 2 positions but value has 1 columns"): + df.isetitem([1, 2], value[["a"]]) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_isin.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_isin.py new file mode 100644 index 0000000000000000000000000000000000000000..b4511aad27a93bd2d9411ac5cdb427196dbf9dda --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_isin.py @@ -0,0 +1,227 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + DataFrame, + MultiIndex, + Series, +) +import pandas._testing as tm + + +class TestDataFrameIsIn: + def test_isin(self): + # GH#4211 + df = DataFrame( + { + "vals": [1, 2, 3, 4], + "ids": ["a", "b", "f", "n"], + "ids2": ["a", "n", "c", "n"], + }, + index=["foo", "bar", "baz", "qux"], + ) + other = ["a", "b", "c"] + + result = df.isin(other) + expected = DataFrame([df.loc[s].isin(other) for s in df.index]) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("empty", [[], Series(dtype=object), np.array([])]) + def test_isin_empty(self, empty): + # GH#16991 + df = DataFrame({"A": ["a", "b", "c"], "B": ["a", "e", "f"]}) + expected = DataFrame(False, df.index, df.columns) + + result = df.isin(empty) + tm.assert_frame_equal(result, expected) + + def test_isin_dict(self): + df = DataFrame({"A": ["a", "b", "c"], "B": ["a", "e", "f"]}) + d = {"A": ["a"]} + + expected = DataFrame(False, df.index, df.columns) + expected.loc[0, "A"] = True + + result = df.isin(d) + tm.assert_frame_equal(result, expected) + + # non unique columns + df = DataFrame({"A": ["a", "b", "c"], "B": ["a", "e", "f"]}) + df.columns = ["A", "A"] + expected = DataFrame(False, df.index, df.columns) + expected.loc[0, "A"] = True + result = df.isin(d) + tm.assert_frame_equal(result, expected) + + def test_isin_with_string_scalar(self): + # GH#4763 + df = DataFrame( + { + "vals": [1, 2, 3, 4], + "ids": ["a", "b", "f", "n"], + "ids2": ["a", "n", "c", "n"], + }, + index=["foo", "bar", "baz", "qux"], + ) + msg = ( + r"only list-like or dict-like objects are allowed " + r"to be passed to DataFrame.isin\(\), you passed a 'str'" + ) + with pytest.raises(TypeError, match=msg): + df.isin("a") + + with pytest.raises(TypeError, match=msg): + df.isin("aaa") + + def test_isin_df(self): + df1 = DataFrame({"A": [1, 2, 3, 4], "B": [2, np.nan, 4, 4]}) + df2 = DataFrame({"A": [0, 2, 12, 4], "B": [2, np.nan, 4, 5]}) + expected = DataFrame(False, df1.index, df1.columns) + result = df1.isin(df2) + expected.loc[[1, 3], "A"] = True + expected.loc[[0, 2], "B"] = True + tm.assert_frame_equal(result, expected) + + # partial overlapping columns + df2.columns = ["A", "C"] + result = df1.isin(df2) + expected["B"] = False + tm.assert_frame_equal(result, expected) + + def test_isin_tuples(self): + # GH#16394 + df = DataFrame({"A": [1, 2, 3], "B": ["a", "b", "f"]}) + df["C"] = list(zip(df["A"], df["B"])) + result = df["C"].isin([(1, "a")]) + tm.assert_series_equal(result, Series([True, False, False], name="C")) + + def test_isin_df_dupe_values(self): + df1 = DataFrame({"A": [1, 2, 3, 4], "B": [2, np.nan, 4, 4]}) + # just cols duped + df2 = DataFrame([[0, 2], [12, 4], [2, np.nan], [4, 5]], columns=["B", "B"]) + msg = r"cannot compute isin with a duplicate axis\." + with pytest.raises(ValueError, match=msg): + df1.isin(df2) + + # just index duped + df2 = DataFrame( + [[0, 2], [12, 4], [2, np.nan], [4, 5]], + columns=["A", "B"], + index=[0, 0, 1, 1], + ) + with pytest.raises(ValueError, match=msg): + df1.isin(df2) + + # cols and index: + df2.columns = ["B", "B"] + with pytest.raises(ValueError, match=msg): + df1.isin(df2) + + def test_isin_dupe_self(self): + other = DataFrame({"A": [1, 0, 1, 0], "B": [1, 1, 0, 0]}) + df = DataFrame([[1, 1], [1, 0], [0, 0]], columns=["A", "A"]) + result = df.isin(other) + expected = DataFrame(False, index=df.index, columns=df.columns) + expected.loc[0] = True + expected.iloc[1, 1] = True + tm.assert_frame_equal(result, expected) + + def test_isin_against_series(self): + df = DataFrame( + {"A": [1, 2, 3, 4], "B": [2, np.nan, 4, 4]}, index=["a", "b", "c", "d"] + ) + s = Series([1, 3, 11, 4], index=["a", "b", "c", "d"]) + expected = DataFrame(False, index=df.index, columns=df.columns) + expected.loc["a", "A"] = True + expected.loc["d"] = True + result = df.isin(s) + tm.assert_frame_equal(result, expected) + + def test_isin_multiIndex(self): + idx = MultiIndex.from_tuples( + [ + (0, "a", "foo"), + (0, "a", "bar"), + (0, "b", "bar"), + (0, "b", "baz"), + (2, "a", "foo"), + (2, "a", "bar"), + (2, "c", "bar"), + (2, "c", "baz"), + (1, "b", "foo"), + (1, "b", "bar"), + (1, "c", "bar"), + (1, "c", "baz"), + ] + ) + df1 = DataFrame({"A": np.ones(12), "B": np.zeros(12)}, index=idx) + df2 = DataFrame( + { + "A": [1, 1, 0, 0, 0, 0, 0, 0, 0, 0, 1, 1], + "B": [1, 1, 0, 1, 1, 0, 0, 1, 1, 1, 1, 1], + } + ) + # against regular index + expected = DataFrame(False, index=df1.index, columns=df1.columns) + result = df1.isin(df2) + tm.assert_frame_equal(result, expected) + + df2.index = idx + expected = df2.values.astype(bool) + expected[:, 1] = ~expected[:, 1] + expected = DataFrame(expected, columns=["A", "B"], index=idx) + + result = df1.isin(df2) + tm.assert_frame_equal(result, expected) + + def test_isin_empty_datetimelike(self): + # GH#15473 + df1_ts = DataFrame({"date": pd.to_datetime(["2014-01-01", "2014-01-02"])}) + df1_td = DataFrame({"date": [pd.Timedelta(1, "s"), pd.Timedelta(2, "s")]}) + df2 = DataFrame({"date": []}) + df3 = DataFrame() + + expected = DataFrame({"date": [False, False]}) + + result = df1_ts.isin(df2) + tm.assert_frame_equal(result, expected) + result = df1_ts.isin(df3) + tm.assert_frame_equal(result, expected) + + result = df1_td.isin(df2) + tm.assert_frame_equal(result, expected) + result = df1_td.isin(df3) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "values", + [ + DataFrame({"a": [1, 2, 3]}, dtype="category"), + Series([1, 2, 3], dtype="category"), + ], + ) + def test_isin_category_frame(self, values): + # GH#34256 + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + expected = DataFrame({"a": [True, True, True], "b": [False, False, False]}) + + result = df.isin(values) + tm.assert_frame_equal(result, expected) + + def test_isin_read_only(self): + # https://github.com/pandas-dev/pandas/issues/37174 + arr = np.array([1, 2, 3]) + arr.setflags(write=False) + df = DataFrame([1, 2, 3]) + result = df.isin(arr) + expected = DataFrame([True, True, True]) + tm.assert_frame_equal(result, expected) + + def test_isin_not_lossy(self): + # GH 53514 + val = 1666880195890293744 + df = DataFrame({"a": [val], "b": [1.0]}) + result = df.isin([val]) + expected = DataFrame({"a": [True], "b": [False]}) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_iterrows.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_iterrows.py new file mode 100644 index 0000000000000000000000000000000000000000..0bd0bed76dc9dea5df4d0afb76ebaf0760a23ecc --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_iterrows.py @@ -0,0 +1,16 @@ +from pandas import ( + DataFrame, + Timedelta, +) + + +def test_no_overflow_of_freq_and_time_in_dataframe(): + # GH 35665 + df = DataFrame( + { + "some_string": ["2222Y3"], + "time": [Timedelta("0 days 00:00:00.990000")], + } + ) + for _, row in df.iterrows(): + assert row.dtype == "object" diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_join.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_join.py new file mode 100644 index 0000000000000000000000000000000000000000..735f6c50ab739dba04ebc49fec73cfa3147fc661 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_join.py @@ -0,0 +1,576 @@ +from datetime import datetime + +import numpy as np +import pytest + +from pandas.errors import MergeError + +import pandas as pd +from pandas import ( + DataFrame, + Index, + MultiIndex, + date_range, + period_range, +) +import pandas._testing as tm +from pandas.core.reshape.concat import concat + + +@pytest.fixture +def frame_with_period_index(): + return DataFrame( + data=np.arange(20).reshape(4, 5), + columns=list("abcde"), + index=period_range(start="2000", freq="Y", periods=4), + ) + + +@pytest.fixture +def left(): + return DataFrame({"a": [20, 10, 0]}, index=[2, 1, 0]) + + +@pytest.fixture +def right(): + return DataFrame({"b": [300, 100, 200]}, index=[3, 1, 2]) + + +@pytest.fixture +def left_no_dup(): + return DataFrame( + {"a": ["a", "b", "c", "d"], "b": ["cat", "dog", "weasel", "horse"]}, + index=range(4), + ) + + +@pytest.fixture +def right_no_dup(): + return DataFrame( + { + "a": ["a", "b", "c", "d", "e"], + "c": ["meow", "bark", "um... weasel noise?", "nay", "chirp"], + }, + index=range(5), + ).set_index("a") + + +@pytest.fixture +def left_w_dups(left_no_dup): + return concat( + [left_no_dup, DataFrame({"a": ["a"], "b": ["cow"]}, index=[3])], sort=True + ) + + +@pytest.fixture +def right_w_dups(right_no_dup): + return concat( + [right_no_dup, DataFrame({"a": ["e"], "c": ["moo"]}, index=[3])] + ).set_index("a") + + +@pytest.mark.parametrize( + "how, sort, expected", + [ + ("inner", False, DataFrame({"a": [20, 10], "b": [200, 100]}, index=[2, 1])), + ("inner", True, DataFrame({"a": [10, 20], "b": [100, 200]}, index=[1, 2])), + ( + "left", + False, + DataFrame({"a": [20, 10, 0], "b": [200, 100, np.nan]}, index=[2, 1, 0]), + ), + ( + "left", + True, + DataFrame({"a": [0, 10, 20], "b": [np.nan, 100, 200]}, index=[0, 1, 2]), + ), + ( + "right", + False, + DataFrame({"a": [np.nan, 10, 20], "b": [300, 100, 200]}, index=[3, 1, 2]), + ), + ( + "right", + True, + DataFrame({"a": [10, 20, np.nan], "b": [100, 200, 300]}, index=[1, 2, 3]), + ), + ( + "outer", + False, + DataFrame( + {"a": [0, 10, 20, np.nan], "b": [np.nan, 100, 200, 300]}, + index=[0, 1, 2, 3], + ), + ), + ( + "outer", + True, + DataFrame( + {"a": [0, 10, 20, np.nan], "b": [np.nan, 100, 200, 300]}, + index=[0, 1, 2, 3], + ), + ), + ], +) +def test_join(left, right, how, sort, expected): + result = left.join(right, how=how, sort=sort, validate="1:1") + tm.assert_frame_equal(result, expected) + + +def test_suffix_on_list_join(): + first = DataFrame({"key": [1, 2, 3, 4, 5]}) + second = DataFrame({"key": [1, 8, 3, 2, 5], "v1": [1, 2, 3, 4, 5]}) + third = DataFrame({"keys": [5, 2, 3, 4, 1], "v2": [1, 2, 3, 4, 5]}) + + # check proper errors are raised + msg = "Suffixes not supported when joining multiple DataFrames" + with pytest.raises(ValueError, match=msg): + first.join([second], lsuffix="y") + with pytest.raises(ValueError, match=msg): + first.join([second, third], rsuffix="x") + with pytest.raises(ValueError, match=msg): + first.join([second, third], lsuffix="y", rsuffix="x") + with pytest.raises(ValueError, match="Indexes have overlapping values"): + first.join([second, third]) + + # no errors should be raised + arr_joined = first.join([third]) + norm_joined = first.join(third) + tm.assert_frame_equal(arr_joined, norm_joined) + + +def test_join_invalid_validate(left_no_dup, right_no_dup): + # GH 46622 + # Check invalid arguments + msg = ( + '"invalid" is not a valid argument. ' + "Valid arguments are:\n" + '- "1:1"\n' + '- "1:m"\n' + '- "m:1"\n' + '- "m:m"\n' + '- "one_to_one"\n' + '- "one_to_many"\n' + '- "many_to_one"\n' + '- "many_to_many"' + ) + with pytest.raises(ValueError, match=msg): + left_no_dup.merge(right_no_dup, on="a", validate="invalid") + + +@pytest.mark.parametrize("dtype", ["object", "string[pyarrow]"]) +def test_join_on_single_col_dup_on_right(left_no_dup, right_w_dups, dtype): + # GH 46622 + # Dups on right allowed by one_to_many constraint + if dtype == "string[pyarrow]": + pytest.importorskip("pyarrow") + left_no_dup = left_no_dup.astype(dtype) + right_w_dups.index = right_w_dups.index.astype(dtype) + left_no_dup.join( + right_w_dups, + on="a", + validate="one_to_many", + ) + + # Dups on right not allowed by one_to_one constraint + msg = "Merge keys are not unique in right dataset; not a one-to-one merge" + with pytest.raises(MergeError, match=msg): + left_no_dup.join( + right_w_dups, + on="a", + validate="one_to_one", + ) + + +def test_join_on_single_col_dup_on_left(left_w_dups, right_no_dup): + # GH 46622 + # Dups on left allowed by many_to_one constraint + left_w_dups.join( + right_no_dup, + on="a", + validate="many_to_one", + ) + + # Dups on left not allowed by one_to_one constraint + msg = "Merge keys are not unique in left dataset; not a one-to-one merge" + with pytest.raises(MergeError, match=msg): + left_w_dups.join( + right_no_dup, + on="a", + validate="one_to_one", + ) + + +def test_join_on_single_col_dup_on_both(left_w_dups, right_w_dups): + # GH 46622 + # Dups on both allowed by many_to_many constraint + left_w_dups.join(right_w_dups, on="a", validate="many_to_many") + + # Dups on both not allowed by many_to_one constraint + msg = "Merge keys are not unique in right dataset; not a many-to-one merge" + with pytest.raises(MergeError, match=msg): + left_w_dups.join( + right_w_dups, + on="a", + validate="many_to_one", + ) + + # Dups on both not allowed by one_to_many constraint + msg = "Merge keys are not unique in left dataset; not a one-to-many merge" + with pytest.raises(MergeError, match=msg): + left_w_dups.join( + right_w_dups, + on="a", + validate="one_to_many", + ) + + +def test_join_on_multi_col_check_dup(): + # GH 46622 + # Two column join, dups in both, but jointly no dups + left = DataFrame( + { + "a": ["a", "a", "b", "b"], + "b": [0, 1, 0, 1], + "c": ["cat", "dog", "weasel", "horse"], + }, + index=range(4), + ).set_index(["a", "b"]) + + right = DataFrame( + { + "a": ["a", "a", "b"], + "b": [0, 1, 0], + "d": ["meow", "bark", "um... weasel noise?"], + }, + index=range(3), + ).set_index(["a", "b"]) + + expected_multi = DataFrame( + { + "a": ["a", "a", "b"], + "b": [0, 1, 0], + "c": ["cat", "dog", "weasel"], + "d": ["meow", "bark", "um... weasel noise?"], + }, + index=range(3), + ).set_index(["a", "b"]) + + # Jointly no dups allowed by one_to_one constraint + result = left.join(right, how="inner", validate="1:1") + tm.assert_frame_equal(result, expected_multi) + + +def test_join_index(float_frame): + # left / right + + f = float_frame.loc[float_frame.index[:10], ["A", "B"]] + f2 = float_frame.loc[float_frame.index[5:], ["C", "D"]].iloc[::-1] + + joined = f.join(f2) + tm.assert_index_equal(f.index, joined.index) + expected_columns = Index(["A", "B", "C", "D"]) + tm.assert_index_equal(joined.columns, expected_columns) + + joined = f.join(f2, how="left") + tm.assert_index_equal(joined.index, f.index) + tm.assert_index_equal(joined.columns, expected_columns) + + joined = f.join(f2, how="right") + tm.assert_index_equal(joined.index, f2.index) + tm.assert_index_equal(joined.columns, expected_columns) + + # inner + + joined = f.join(f2, how="inner") + tm.assert_index_equal(joined.index, f.index[5:10]) + tm.assert_index_equal(joined.columns, expected_columns) + + # outer + + joined = f.join(f2, how="outer") + tm.assert_index_equal(joined.index, float_frame.index.sort_values()) + tm.assert_index_equal(joined.columns, expected_columns) + + with pytest.raises(ValueError, match="join method"): + f.join(f2, how="foo") + + # corner case - overlapping columns + msg = "columns overlap but no suffix" + for how in ("outer", "left", "inner"): + with pytest.raises(ValueError, match=msg): + float_frame.join(float_frame, how=how) + + +def test_join_index_more(float_frame): + af = float_frame.loc[:, ["A", "B"]] + bf = float_frame.loc[::2, ["C", "D"]] + + expected = af.copy() + expected["C"] = float_frame["C"][::2] + expected["D"] = float_frame["D"][::2] + + result = af.join(bf) + tm.assert_frame_equal(result, expected) + + result = af.join(bf, how="right") + tm.assert_frame_equal(result, expected[::2]) + + result = bf.join(af, how="right") + tm.assert_frame_equal(result, expected.loc[:, result.columns]) + + +def test_join_index_series(float_frame): + df = float_frame.copy() + ser = df.pop(float_frame.columns[-1]) + joined = df.join(ser) + + tm.assert_frame_equal(joined, float_frame) + + ser.name = None + with pytest.raises(ValueError, match="must have a name"): + df.join(ser) + + +def test_join_overlap(float_frame): + df1 = float_frame.loc[:, ["A", "B", "C"]] + df2 = float_frame.loc[:, ["B", "C", "D"]] + + joined = df1.join(df2, lsuffix="_df1", rsuffix="_df2") + df1_suf = df1.loc[:, ["B", "C"]].add_suffix("_df1") + df2_suf = df2.loc[:, ["B", "C"]].add_suffix("_df2") + + no_overlap = float_frame.loc[:, ["A", "D"]] + expected = df1_suf.join(df2_suf).join(no_overlap) + + # column order not necessarily sorted + tm.assert_frame_equal(joined, expected.loc[:, joined.columns]) + + +def test_join_period_index(frame_with_period_index): + other = frame_with_period_index.rename(columns=lambda key: f"{key}{key}") + + joined_values = np.concatenate([frame_with_period_index.values] * 2, axis=1) + + joined_cols = frame_with_period_index.columns.append(other.columns) + + joined = frame_with_period_index.join(other) + expected = DataFrame( + data=joined_values, columns=joined_cols, index=frame_with_period_index.index + ) + + tm.assert_frame_equal(joined, expected) + + +def test_join_left_sequence_non_unique_index(): + # https://github.com/pandas-dev/pandas/issues/19607 + df1 = DataFrame({"a": [0, 10, 20]}, index=[1, 2, 3]) + df2 = DataFrame({"b": [100, 200, 300]}, index=[4, 3, 2]) + df3 = DataFrame({"c": [400, 500, 600]}, index=[2, 2, 4]) + + joined = df1.join([df2, df3], how="left") + + expected = DataFrame( + { + "a": [0, 10, 10, 20], + "b": [np.nan, 300, 300, 200], + "c": [np.nan, 400, 500, np.nan], + }, + index=[1, 2, 2, 3], + ) + + tm.assert_frame_equal(joined, expected) + + +def test_join_list_series(float_frame): + # GH#46850 + # Join a DataFrame with a list containing both a Series and a DataFrame + left = float_frame.A.to_frame() + right = [float_frame.B, float_frame[["C", "D"]]] + result = left.join(right) + tm.assert_frame_equal(result, float_frame) + + +@pytest.mark.parametrize("sort_kw", [True, False]) +def test_suppress_future_warning_with_sort_kw(sort_kw): + a = DataFrame({"col1": [1, 2]}, index=["c", "a"]) + + b = DataFrame({"col2": [4, 5]}, index=["b", "a"]) + + c = DataFrame({"col3": [7, 8]}, index=["a", "b"]) + + expected = DataFrame( + { + "col1": {"a": 2.0, "b": float("nan"), "c": 1.0}, + "col2": {"a": 5.0, "b": 4.0, "c": float("nan")}, + "col3": {"a": 7.0, "b": 8.0, "c": float("nan")}, + } + ) + if sort_kw is False: + expected = expected.reindex(index=["c", "a", "b"]) + + with tm.assert_produces_warning(None): + result = a.join([b, c], how="outer", sort=sort_kw) + tm.assert_frame_equal(result, expected) + + +class TestDataFrameJoin: + def test_join(self, multiindex_dataframe_random_data): + frame = multiindex_dataframe_random_data + + a = frame.loc[frame.index[:5], ["A"]] + b = frame.loc[frame.index[2:], ["B", "C"]] + + joined = a.join(b, how="outer").reindex(frame.index) + expected = frame.copy().values.copy() + expected[np.isnan(joined.values)] = np.nan + expected = DataFrame(expected, index=frame.index, columns=frame.columns) + + assert not np.isnan(joined.values).all() + + tm.assert_frame_equal(joined, expected) + + def test_join_segfault(self): + # GH#1532 + df1 = DataFrame({"a": [1, 1], "b": [1, 2], "x": [1, 2]}) + df2 = DataFrame({"a": [2, 2], "b": [1, 2], "y": [1, 2]}) + df1 = df1.set_index(["a", "b"]) + df2 = df2.set_index(["a", "b"]) + # it works! + for how in ["left", "right", "outer"]: + df1.join(df2, how=how) + + def test_join_str_datetime(self): + str_dates = ["20120209", "20120222"] + dt_dates = [datetime(2012, 2, 9), datetime(2012, 2, 22)] + + A = DataFrame(str_dates, index=range(2), columns=["aa"]) + C = DataFrame([[1, 2], [3, 4]], index=str_dates, columns=dt_dates) + + tst = A.join(C, on="aa") + + assert len(tst.columns) == 3 + + def test_join_multiindex_leftright(self): + # GH 10741 + df1 = DataFrame( + [ + ["a", "x", 0.471780], + ["a", "y", 0.774908], + ["a", "z", 0.563634], + ["b", "x", -0.353756], + ["b", "y", 0.368062], + ["b", "z", -1.721840], + ["c", "x", 1], + ["c", "y", 2], + ["c", "z", 3], + ], + columns=["first", "second", "value1"], + ).set_index(["first", "second"]) + + df2 = DataFrame([["a", 10], ["b", 20]], columns=["first", "value2"]).set_index( + ["first"] + ) + + exp = DataFrame( + [ + [0.471780, 10], + [0.774908, 10], + [0.563634, 10], + [-0.353756, 20], + [0.368062, 20], + [-1.721840, 20], + [1.000000, np.nan], + [2.000000, np.nan], + [3.000000, np.nan], + ], + index=df1.index, + columns=["value1", "value2"], + ) + + # these must be the same results (but columns are flipped) + tm.assert_frame_equal(df1.join(df2, how="left"), exp) + tm.assert_frame_equal(df2.join(df1, how="right"), exp[["value2", "value1"]]) + + exp_idx = MultiIndex.from_product( + [["a", "b"], ["x", "y", "z"]], names=["first", "second"] + ) + exp = DataFrame( + [ + [0.471780, 10], + [0.774908, 10], + [0.563634, 10], + [-0.353756, 20], + [0.368062, 20], + [-1.721840, 20], + ], + index=exp_idx, + columns=["value1", "value2"], + ) + + tm.assert_frame_equal(df1.join(df2, how="right"), exp) + tm.assert_frame_equal(df2.join(df1, how="left"), exp[["value2", "value1"]]) + + def test_join_multiindex_dates(self): + # GH 33692 + date = pd.Timestamp(2000, 1, 1).date() + + df1_index = MultiIndex.from_tuples([(0, date)], names=["index_0", "date"]) + df1 = DataFrame({"col1": [0]}, index=df1_index) + df2_index = MultiIndex.from_tuples([(0, date)], names=["index_0", "date"]) + df2 = DataFrame({"col2": [0]}, index=df2_index) + df3_index = MultiIndex.from_tuples([(0, date)], names=["index_0", "date"]) + df3 = DataFrame({"col3": [0]}, index=df3_index) + + result = df1.join([df2, df3]) + + expected_index = MultiIndex.from_tuples([(0, date)], names=["index_0", "date"]) + expected = DataFrame( + {"col1": [0], "col2": [0], "col3": [0]}, index=expected_index + ) + + tm.assert_equal(result, expected) + + def test_merge_join_different_levels_raises(self): + # GH#9455 + # GH 40993: For raising, enforced in 2.0 + + # first dataframe + df1 = DataFrame(columns=["a", "b"], data=[[1, 11], [0, 22]]) + + # second dataframe + columns = MultiIndex.from_tuples([("a", ""), ("c", "c1")]) + df2 = DataFrame(columns=columns, data=[[1, 33], [0, 44]]) + + # merge + with pytest.raises( + MergeError, match="Not allowed to merge between different levels" + ): + pd.merge(df1, df2, on="a") + + # join, see discussion in GH#12219 + with pytest.raises( + MergeError, match="Not allowed to merge between different levels" + ): + df1.join(df2, on="a") + + def test_frame_join_tzaware(self): + test1 = DataFrame( + np.zeros((6, 3)), + index=date_range( + "2012-11-15 00:00:00", periods=6, freq="100ms", tz="US/Central" + ), + ) + test2 = DataFrame( + np.zeros((3, 3)), + index=date_range( + "2012-11-15 00:00:00", periods=3, freq="250ms", tz="US/Central" + ), + columns=range(3, 6), + ) + + result = test1.join(test2, how="outer") + expected = test1.index.union(test2.index) + + tm.assert_index_equal(result.index, expected) + assert result.index.tz.zone == "US/Central" diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_map.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_map.py new file mode 100644 index 0000000000000000000000000000000000000000..03681c3df844e058e147a026e45c226469f38f9d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_map.py @@ -0,0 +1,216 @@ +from datetime import datetime + +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + DataFrame, + Series, + Timestamp, + date_range, +) +import pandas._testing as tm + +from pandas.tseries.offsets import BDay + + +def test_map(float_frame): + result = float_frame.map(lambda x: x * 2) + tm.assert_frame_equal(result, float_frame * 2) + float_frame.map(type) + + # GH 465: function returning tuples + result = float_frame.map(lambda x: (x, x))["A"].iloc[0] + assert isinstance(result, tuple) + + +@pytest.mark.parametrize("val", [1, 1.0]) +def test_map_float_object_conversion(val): + # GH 2909: object conversion to float in constructor? + df = DataFrame(data=[val, "a"]) + result = df.map(lambda x: x).dtypes[0] + assert result == object + + +@pytest.mark.parametrize("na_action", [None, "ignore"]) +def test_map_keeps_dtype(na_action): + # GH52219 + arr = Series(["a", np.nan, "b"]) + sparse_arr = arr.astype(pd.SparseDtype(object)) + df = DataFrame(data={"a": arr, "b": sparse_arr}) + + def func(x): + return str.upper(x) if not pd.isna(x) else x + + result = df.map(func, na_action=na_action) + + expected_sparse = pd.array(["A", np.nan, "B"], dtype=pd.SparseDtype(object)) + expected_arr = expected_sparse.astype(object) + expected = DataFrame({"a": expected_arr, "b": expected_sparse}) + + tm.assert_frame_equal(result, expected) + + result_empty = df.iloc[:0, :].map(func, na_action=na_action) + expected_empty = expected.iloc[:0, :] + tm.assert_frame_equal(result_empty, expected_empty) + + +def test_map_str(): + # GH 2786 + df = DataFrame(np.random.default_rng(2).random((3, 4))) + df2 = df.copy() + cols = ["a", "a", "a", "a"] + df.columns = cols + + expected = df2.map(str) + expected.columns = cols + result = df.map(str) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "col, val", + [["datetime", Timestamp("20130101")], ["timedelta", pd.Timedelta("1 min")]], +) +def test_map_datetimelike(col, val): + # datetime/timedelta + df = DataFrame(np.random.default_rng(2).random((3, 4))) + df[col] = val + result = df.map(str) + assert result.loc[0, col] == str(df.loc[0, col]) + + +@pytest.mark.parametrize( + "expected", + [ + DataFrame(), + DataFrame(columns=list("ABC")), + DataFrame(index=list("ABC")), + DataFrame({"A": [], "B": [], "C": []}), + ], +) +@pytest.mark.parametrize("func", [round, lambda x: x]) +def test_map_empty(expected, func): + # GH 8222 + result = expected.map(func) + tm.assert_frame_equal(result, expected) + + +def test_map_kwargs(): + # GH 40652 + result = DataFrame([[1, 2], [3, 4]]).map(lambda x, y: x + y, y=2) + expected = DataFrame([[3, 4], [5, 6]]) + tm.assert_frame_equal(result, expected) + + +def test_map_na_ignore(float_frame): + # GH 23803 + strlen_frame = float_frame.map(lambda x: len(str(x))) + float_frame_with_na = float_frame.copy() + mask = np.random.default_rng(2).integers(0, 2, size=float_frame.shape, dtype=bool) + float_frame_with_na[mask] = pd.NA + strlen_frame_na_ignore = float_frame_with_na.map( + lambda x: len(str(x)), na_action="ignore" + ) + # Set float64 type to avoid upcast when setting NA below + strlen_frame_with_na = strlen_frame.copy().astype("float64") + strlen_frame_with_na[mask] = pd.NA + tm.assert_frame_equal(strlen_frame_na_ignore, strlen_frame_with_na) + + +def test_map_box_timestamps(): + # GH 2689, GH 2627 + ser = Series(date_range("1/1/2000", periods=10)) + + def func(x): + return (x.hour, x.day, x.month) + + # it works! + DataFrame(ser).map(func) + + +def test_map_box(): + # ufunc will not be boxed. Same test cases as the test_map_box + df = DataFrame( + { + "a": [Timestamp("2011-01-01"), Timestamp("2011-01-02")], + "b": [ + Timestamp("2011-01-01", tz="US/Eastern"), + Timestamp("2011-01-02", tz="US/Eastern"), + ], + "c": [pd.Timedelta("1 days"), pd.Timedelta("2 days")], + "d": [ + pd.Period("2011-01-01", freq="M"), + pd.Period("2011-01-02", freq="M"), + ], + } + ) + + result = df.map(lambda x: type(x).__name__) + expected = DataFrame( + { + "a": ["Timestamp", "Timestamp"], + "b": ["Timestamp", "Timestamp"], + "c": ["Timedelta", "Timedelta"], + "d": ["Period", "Period"], + } + ) + tm.assert_frame_equal(result, expected) + + +def test_frame_map_dont_convert_datetime64(): + df = DataFrame({"x1": [datetime(1996, 1, 1)]}) + + df = df.map(lambda x: x + BDay()) + df = df.map(lambda x: x + BDay()) + + result = df.x1.dtype + assert result == "M8[ns]" + + +def test_map_function_runs_once(): + df = DataFrame({"a": [1, 2, 3]}) + values = [] # Save values function is applied to + + def reducing_function(val): + values.append(val) + + def non_reducing_function(val): + values.append(val) + return val + + for func in [reducing_function, non_reducing_function]: + del values[:] + + df.map(func) + assert values == df.a.to_list() + + +def test_map_type(): + # GH 46719 + df = DataFrame( + {"col1": [3, "string", float], "col2": [0.25, datetime(2020, 1, 1), np.nan]}, + index=["a", "b", "c"], + ) + + result = df.map(type) + expected = DataFrame( + {"col1": [int, str, type], "col2": [float, datetime, float]}, + index=["a", "b", "c"], + ) + tm.assert_frame_equal(result, expected) + + +def test_map_invalid_na_action(float_frame): + # GH 23803 + with pytest.raises(ValueError, match="na_action must be .*Got 'abc'"): + float_frame.map(lambda x: len(str(x)), na_action="abc") + + +def test_applymap_deprecated(): + # GH52353 + df = DataFrame({"a": [1, 2, 3]}) + msg = "DataFrame.applymap has been deprecated. Use DataFrame.map instead." + with tm.assert_produces_warning(FutureWarning, match=msg): + df.applymap(lambda x: x) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_matmul.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_matmul.py new file mode 100644 index 0000000000000000000000000000000000000000..be9462b64fa1b919b13772e9d07727258931b952 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_matmul.py @@ -0,0 +1,98 @@ +import operator + +import numpy as np +import pytest + +from pandas import ( + DataFrame, + Index, + Series, +) +import pandas._testing as tm + + +class TestMatMul: + def test_matmul(self): + # matmul test is for GH#10259 + a = DataFrame( + np.random.default_rng(2).standard_normal((3, 4)), + index=["a", "b", "c"], + columns=["p", "q", "r", "s"], + ) + b = DataFrame( + np.random.default_rng(2).standard_normal((4, 2)), + index=["p", "q", "r", "s"], + columns=["one", "two"], + ) + + # DataFrame @ DataFrame + result = operator.matmul(a, b) + expected = DataFrame( + np.dot(a.values, b.values), index=["a", "b", "c"], columns=["one", "two"] + ) + tm.assert_frame_equal(result, expected) + + # DataFrame @ Series + result = operator.matmul(a, b.one) + expected = Series(np.dot(a.values, b.one.values), index=["a", "b", "c"]) + tm.assert_series_equal(result, expected) + + # np.array @ DataFrame + result = operator.matmul(a.values, b) + assert isinstance(result, DataFrame) + assert result.columns.equals(b.columns) + assert result.index.equals(Index(range(3))) + expected = np.dot(a.values, b.values) + tm.assert_almost_equal(result.values, expected) + + # nested list @ DataFrame (__rmatmul__) + result = operator.matmul(a.values.tolist(), b) + expected = DataFrame( + np.dot(a.values, b.values), index=["a", "b", "c"], columns=["one", "two"] + ) + tm.assert_almost_equal(result.values, expected.values) + + # mixed dtype DataFrame @ DataFrame + a["q"] = a.q.round().astype(int) + result = operator.matmul(a, b) + expected = DataFrame( + np.dot(a.values, b.values), index=["a", "b", "c"], columns=["one", "two"] + ) + tm.assert_frame_equal(result, expected) + + # different dtypes DataFrame @ DataFrame + a = a.astype(int) + result = operator.matmul(a, b) + expected = DataFrame( + np.dot(a.values, b.values), index=["a", "b", "c"], columns=["one", "two"] + ) + tm.assert_frame_equal(result, expected) + + # unaligned + df = DataFrame( + np.random.default_rng(2).standard_normal((3, 4)), + index=[1, 2, 3], + columns=range(4), + ) + df2 = DataFrame( + np.random.default_rng(2).standard_normal((5, 3)), + index=range(5), + columns=[1, 2, 3], + ) + + with pytest.raises(ValueError, match="aligned"): + operator.matmul(df, df2) + + def test_matmul_message_shapes(self): + # GH#21581 exception message should reflect original shapes, + # not transposed shapes + a = np.random.default_rng(2).random((10, 4)) + b = np.random.default_rng(2).random((5, 3)) + + df = DataFrame(b) + + msg = r"shapes \(10, 4\) and \(5, 3\) not aligned" + with pytest.raises(ValueError, match=msg): + a @ df + with pytest.raises(ValueError, match=msg): + a.tolist() @ df diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_nlargest.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_nlargest.py new file mode 100644 index 0000000000000000000000000000000000000000..54f2e45488b7886eebf6635a812c5eb2a21b0400 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_nlargest.py @@ -0,0 +1,250 @@ +""" +Note: for naming purposes, most tests are title with as e.g. "test_nlargest_foo" +but are implicitly also testing nsmallest_foo. +""" +from string import ascii_lowercase + +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm +from pandas.util.version import Version + + +@pytest.fixture +def df_duplicates(): + return pd.DataFrame( + {"a": [1, 2, 3, 4, 4], "b": [1, 1, 1, 1, 1], "c": [0, 1, 2, 5, 4]}, + index=[0, 0, 1, 1, 1], + ) + + +@pytest.fixture +def df_strings(): + return pd.DataFrame( + { + "a": np.random.default_rng(2).permutation(10), + "b": list(ascii_lowercase[:10]), + "c": np.random.default_rng(2).permutation(10).astype("float64"), + } + ) + + +@pytest.fixture +def df_main_dtypes(): + return pd.DataFrame( + { + "group": [1, 1, 2], + "int": [1, 2, 3], + "float": [4.0, 5.0, 6.0], + "string": list("abc"), + "category_string": pd.Series(list("abc")).astype("category"), + "category_int": [7, 8, 9], + "datetime": pd.date_range("20130101", periods=3), + "datetimetz": pd.date_range("20130101", periods=3, tz="US/Eastern"), + "timedelta": pd.timedelta_range("1 s", periods=3, freq="s"), + }, + columns=[ + "group", + "int", + "float", + "string", + "category_string", + "category_int", + "datetime", + "datetimetz", + "timedelta", + ], + ) + + +class TestNLargestNSmallest: + # ---------------------------------------------------------------------- + # Top / bottom + @pytest.mark.parametrize( + "order", + [ + ["a"], + ["c"], + ["a", "b"], + ["a", "c"], + ["b", "a"], + ["b", "c"], + ["a", "b", "c"], + ["c", "a", "b"], + ["c", "b", "a"], + ["b", "c", "a"], + ["b", "a", "c"], + # dups! + ["b", "c", "c"], + ], + ) + @pytest.mark.parametrize("n", range(1, 11)) + def test_nlargest_n(self, df_strings, nselect_method, n, order): + # GH#10393 + df = df_strings + if "b" in order: + error_msg = ( + f"Column 'b' has dtype (object|str), " + f"cannot use method '{nselect_method}' with this dtype" + ) + with pytest.raises(TypeError, match=error_msg): + getattr(df, nselect_method)(n, order) + else: + ascending = nselect_method == "nsmallest" + result = getattr(df, nselect_method)(n, order) + expected = df.sort_values(order, ascending=ascending).head(n) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "columns", [["group", "category_string"], ["group", "string"]] + ) + def test_nlargest_error(self, df_main_dtypes, nselect_method, columns): + df = df_main_dtypes + col = columns[1] + error_msg = ( + f"Column '{col}' has dtype {df[col].dtype}, " + f"cannot use method '{nselect_method}' with this dtype" + ) + # escape some characters that may be in the repr + error_msg = ( + error_msg.replace("(", "\\(") + .replace(")", "\\)") + .replace("[", "\\[") + .replace("]", "\\]") + ) + with pytest.raises(TypeError, match=error_msg): + getattr(df, nselect_method)(2, columns) + + def test_nlargest_all_dtypes(self, df_main_dtypes): + df = df_main_dtypes + df.nsmallest(2, list(set(df) - {"category_string", "string"})) + df.nlargest(2, list(set(df) - {"category_string", "string"})) + + def test_nlargest_duplicates_on_starter_columns(self): + # regression test for GH#22752 + + df = pd.DataFrame({"a": [2, 2, 2, 1, 1, 1], "b": [1, 2, 3, 3, 2, 1]}) + + result = df.nlargest(4, columns=["a", "b"]) + expected = pd.DataFrame( + {"a": [2, 2, 2, 1], "b": [3, 2, 1, 3]}, index=[2, 1, 0, 3] + ) + tm.assert_frame_equal(result, expected) + + result = df.nsmallest(4, columns=["a", "b"]) + expected = pd.DataFrame( + {"a": [1, 1, 1, 2], "b": [1, 2, 3, 1]}, index=[5, 4, 3, 0] + ) + tm.assert_frame_equal(result, expected) + + def test_nlargest_n_identical_values(self): + # GH#15297 + df = pd.DataFrame({"a": [1] * 5, "b": [1, 2, 3, 4, 5]}) + + result = df.nlargest(3, "a") + expected = pd.DataFrame({"a": [1] * 3, "b": [1, 2, 3]}, index=[0, 1, 2]) + tm.assert_frame_equal(result, expected) + + result = df.nsmallest(3, "a") + expected = pd.DataFrame({"a": [1] * 3, "b": [1, 2, 3]}) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "order", + [["a", "b", "c"], ["c", "b", "a"], ["a"], ["b"], ["a", "b"], ["c", "b"]], + ) + @pytest.mark.parametrize("n", range(1, 6)) + def test_nlargest_n_duplicate_index(self, df_duplicates, n, order, request): + # GH#13412 + + df = df_duplicates + result = df.nsmallest(n, order) + expected = df.sort_values(order).head(n) + tm.assert_frame_equal(result, expected) + + result = df.nlargest(n, order) + expected = df.sort_values(order, ascending=False).head(n) + if Version(np.__version__) >= Version("1.25") and ( + (order == ["a"] and n in (1, 2, 3, 4)) or (order == ["a", "b"]) and n == 5 + ): + request.applymarker( + pytest.mark.xfail( + reason=( + "pandas default unstable sorting of duplicates" + "issue with numpy>=1.25 with AVX instructions" + ), + strict=False, + ) + ) + tm.assert_frame_equal(result, expected) + + def test_nlargest_duplicate_keep_all_ties(self): + # GH#16818 + df = pd.DataFrame( + {"a": [5, 4, 4, 2, 3, 3, 3, 3], "b": [10, 9, 8, 7, 5, 50, 10, 20]} + ) + result = df.nlargest(4, "a", keep="all") + expected = pd.DataFrame( + { + "a": {0: 5, 1: 4, 2: 4, 4: 3, 5: 3, 6: 3, 7: 3}, + "b": {0: 10, 1: 9, 2: 8, 4: 5, 5: 50, 6: 10, 7: 20}, + } + ) + tm.assert_frame_equal(result, expected) + + result = df.nsmallest(2, "a", keep="all") + expected = pd.DataFrame( + { + "a": {3: 2, 4: 3, 5: 3, 6: 3, 7: 3}, + "b": {3: 7, 4: 5, 5: 50, 6: 10, 7: 20}, + } + ) + tm.assert_frame_equal(result, expected) + + def test_nlargest_multiindex_column_lookup(self): + # Check whether tuples are correctly treated as multi-level lookups. + # GH#23033 + df = pd.DataFrame( + columns=pd.MultiIndex.from_product([["x"], ["a", "b"]]), + data=[[0.33, 0.13], [0.86, 0.25], [0.25, 0.70], [0.85, 0.91]], + ) + + # nsmallest + result = df.nsmallest(3, ("x", "a")) + expected = df.iloc[[2, 0, 3]] + tm.assert_frame_equal(result, expected) + + # nlargest + result = df.nlargest(3, ("x", "b")) + expected = df.iloc[[3, 2, 1]] + tm.assert_frame_equal(result, expected) + + def test_nlargest_nan(self): + # GH#43060 + df = pd.DataFrame([np.nan, np.nan, 0, 1, 2, 3]) + result = df.nlargest(5, 0) + expected = df.sort_values(0, ascending=False).head(5) + tm.assert_frame_equal(result, expected) + + def test_nsmallest_nan_after_n_element(self): + # GH#46589 + df = pd.DataFrame( + { + "a": [1, 2, 3, 4, 5, None, 7], + "b": [7, 6, 5, 4, 3, 2, 1], + "c": [1, 1, 2, 2, 3, 3, 3], + }, + index=range(7), + ) + result = df.nsmallest(5, columns=["a", "b"]) + expected = pd.DataFrame( + { + "a": [1, 2, 3, 4, 5], + "b": [7, 6, 5, 4, 3], + "c": [1, 1, 2, 2, 3], + }, + index=range(5), + ).astype({"a": "float"}) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_pct_change.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_pct_change.py new file mode 100644 index 0000000000000000000000000000000000000000..92b66e12d4356ca33d6351b092e3655541c9e8bb --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_pct_change.py @@ -0,0 +1,180 @@ +import numpy as np +import pytest + +from pandas import ( + DataFrame, + Series, +) +import pandas._testing as tm + + +class TestDataFramePctChange: + @pytest.mark.parametrize( + "periods, fill_method, limit, exp", + [ + (1, "ffill", None, [np.nan, np.nan, np.nan, 1, 1, 1.5, 0, 0]), + (1, "ffill", 1, [np.nan, np.nan, np.nan, 1, 1, 1.5, 0, np.nan]), + (1, "bfill", None, [np.nan, 0, 0, 1, 1, 1.5, np.nan, np.nan]), + (1, "bfill", 1, [np.nan, np.nan, 0, 1, 1, 1.5, np.nan, np.nan]), + (-1, "ffill", None, [np.nan, np.nan, -0.5, -0.5, -0.6, 0, 0, np.nan]), + (-1, "ffill", 1, [np.nan, np.nan, -0.5, -0.5, -0.6, 0, np.nan, np.nan]), + (-1, "bfill", None, [0, 0, -0.5, -0.5, -0.6, np.nan, np.nan, np.nan]), + (-1, "bfill", 1, [np.nan, 0, -0.5, -0.5, -0.6, np.nan, np.nan, np.nan]), + ], + ) + def test_pct_change_with_nas( + self, periods, fill_method, limit, exp, frame_or_series + ): + vals = [np.nan, np.nan, 1, 2, 4, 10, np.nan, np.nan] + obj = frame_or_series(vals) + + msg = ( + "The 'fill_method' keyword being not None and the 'limit' keyword in " + f"{type(obj).__name__}.pct_change are deprecated" + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + res = obj.pct_change(periods=periods, fill_method=fill_method, limit=limit) + tm.assert_equal(res, frame_or_series(exp)) + + def test_pct_change_numeric(self): + # GH#11150 + pnl = DataFrame( + [np.arange(0, 40, 10), np.arange(0, 40, 10), np.arange(0, 40, 10)] + ).astype(np.float64) + pnl.iat[1, 0] = np.nan + pnl.iat[1, 1] = np.nan + pnl.iat[2, 3] = 60 + + msg = ( + "The 'fill_method' keyword being not None and the 'limit' keyword in " + "DataFrame.pct_change are deprecated" + ) + + for axis in range(2): + expected = pnl.ffill(axis=axis) / pnl.ffill(axis=axis).shift(axis=axis) - 1 + + with tm.assert_produces_warning(FutureWarning, match=msg): + result = pnl.pct_change(axis=axis, fill_method="pad") + tm.assert_frame_equal(result, expected) + + def test_pct_change(self, datetime_frame): + msg = ( + "The 'fill_method' keyword being not None and the 'limit' keyword in " + "DataFrame.pct_change are deprecated" + ) + + rs = datetime_frame.pct_change(fill_method=None) + tm.assert_frame_equal(rs, datetime_frame / datetime_frame.shift(1) - 1) + + rs = datetime_frame.pct_change(2) + filled = datetime_frame.ffill() + tm.assert_frame_equal(rs, filled / filled.shift(2) - 1) + + with tm.assert_produces_warning(FutureWarning, match=msg): + rs = datetime_frame.pct_change(fill_method="bfill", limit=1) + filled = datetime_frame.bfill(limit=1) + tm.assert_frame_equal(rs, filled / filled.shift(1) - 1) + + rs = datetime_frame.pct_change(freq="5D") + filled = datetime_frame.ffill() + tm.assert_frame_equal( + rs, (filled / filled.shift(freq="5D") - 1).reindex_like(filled) + ) + + def test_pct_change_shift_over_nas(self): + s = Series([1.0, 1.5, np.nan, 2.5, 3.0]) + + df = DataFrame({"a": s, "b": s}) + + msg = "The default fill_method='pad' in DataFrame.pct_change is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + chg = df.pct_change() + + expected = Series([np.nan, 0.5, 0.0, 2.5 / 1.5 - 1, 0.2]) + edf = DataFrame({"a": expected, "b": expected}) + tm.assert_frame_equal(chg, edf) + + @pytest.mark.parametrize( + "freq, periods, fill_method, limit", + [ + ("5B", 5, None, None), + ("3B", 3, None, None), + ("3B", 3, "bfill", None), + ("7B", 7, "pad", 1), + ("7B", 7, "bfill", 3), + ("14B", 14, None, None), + ], + ) + def test_pct_change_periods_freq( + self, datetime_frame, freq, periods, fill_method, limit + ): + msg = ( + "The 'fill_method' keyword being not None and the 'limit' keyword in " + "DataFrame.pct_change are deprecated" + ) + + # GH#7292 + with tm.assert_produces_warning(FutureWarning, match=msg): + rs_freq = datetime_frame.pct_change( + freq=freq, fill_method=fill_method, limit=limit + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + rs_periods = datetime_frame.pct_change( + periods, fill_method=fill_method, limit=limit + ) + tm.assert_frame_equal(rs_freq, rs_periods) + + empty_ts = DataFrame(index=datetime_frame.index, columns=datetime_frame.columns) + with tm.assert_produces_warning(FutureWarning, match=msg): + rs_freq = empty_ts.pct_change( + freq=freq, fill_method=fill_method, limit=limit + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + rs_periods = empty_ts.pct_change( + periods, fill_method=fill_method, limit=limit + ) + tm.assert_frame_equal(rs_freq, rs_periods) + + +@pytest.mark.parametrize("fill_method", ["pad", "ffill", None]) +def test_pct_change_with_duplicated_indices(fill_method): + # GH30463 + data = DataFrame( + {0: [np.nan, 1, 2, 3, 9, 18], 1: [0, 1, np.nan, 3, 9, 18]}, index=["a", "b"] * 3 + ) + + warn = None if fill_method is None else FutureWarning + msg = ( + "The 'fill_method' keyword being not None and the 'limit' keyword in " + "DataFrame.pct_change are deprecated" + ) + with tm.assert_produces_warning(warn, match=msg): + result = data.pct_change(fill_method=fill_method) + + if fill_method is None: + second_column = [np.nan, np.inf, np.nan, np.nan, 2.0, 1.0] + else: + second_column = [np.nan, np.inf, 0.0, 2.0, 2.0, 1.0] + expected = DataFrame( + {0: [np.nan, np.nan, 1.0, 0.5, 2.0, 1.0], 1: second_column}, + index=["a", "b"] * 3, + ) + tm.assert_frame_equal(result, expected) + + +def test_pct_change_none_beginning_no_warning(): + # GH#54481 + df = DataFrame( + [ + [1, None], + [2, 1], + [3, 2], + [4, 3], + [5, 4], + ] + ) + result = df.pct_change() + expected = DataFrame( + {0: [np.nan, 1, 0.5, 1 / 3, 0.25], 1: [np.nan, np.nan, 1, 0.5, 1 / 3]} + ) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_pipe.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_pipe.py new file mode 100644 index 0000000000000000000000000000000000000000..5bcc4360487f38491e2ae9f4c79d837e72ed0f6d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_pipe.py @@ -0,0 +1,39 @@ +import pytest + +from pandas import ( + DataFrame, + Series, +) +import pandas._testing as tm + + +class TestPipe: + def test_pipe(self, frame_or_series): + obj = DataFrame({"A": [1, 2, 3]}) + expected = DataFrame({"A": [1, 4, 9]}) + if frame_or_series is Series: + obj = obj["A"] + expected = expected["A"] + + f = lambda x, y: x**y + result = obj.pipe(f, 2) + tm.assert_equal(result, expected) + + def test_pipe_tuple(self, frame_or_series): + obj = DataFrame({"A": [1, 2, 3]}) + obj = tm.get_obj(obj, frame_or_series) + + f = lambda x, y: y + result = obj.pipe((f, "y"), 0) + tm.assert_equal(result, obj) + + def test_pipe_tuple_error(self, frame_or_series): + obj = DataFrame({"A": [1, 2, 3]}) + obj = tm.get_obj(obj, frame_or_series) + + f = lambda x, y: y + + msg = "y is both the pipe target and a keyword argument" + + with pytest.raises(ValueError, match=msg): + obj.pipe((f, "y"), x=1, y=0) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_pop.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_pop.py new file mode 100644 index 0000000000000000000000000000000000000000..3eb058015cd3da081e3c34954c0bd3229337de31 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_pop.py @@ -0,0 +1,72 @@ +import numpy as np + +from pandas import ( + DataFrame, + MultiIndex, + Series, +) +import pandas._testing as tm + + +class TestDataFramePop: + def test_pop(self, float_frame, warn_copy_on_write): + float_frame.columns.name = "baz" + + float_frame.pop("A") + assert "A" not in float_frame + + float_frame["foo"] = "bar" + float_frame.pop("foo") + assert "foo" not in float_frame + assert float_frame.columns.name == "baz" + + # gh-10912: inplace ops cause caching issue + a = DataFrame([[1, 2, 3], [4, 5, 6]], columns=["A", "B", "C"], index=["X", "Y"]) + b = a.pop("B") + with tm.assert_cow_warning(warn_copy_on_write): + b += 1 + + # original frame + expected = DataFrame([[1, 3], [4, 6]], columns=["A", "C"], index=["X", "Y"]) + tm.assert_frame_equal(a, expected) + + # result + expected = Series([2, 5], index=["X", "Y"], name="B") + 1 + tm.assert_series_equal(b, expected) + + def test_pop_non_unique_cols(self): + df = DataFrame({0: [0, 1], 1: [0, 1], 2: [4, 5]}) + df.columns = ["a", "b", "a"] + + res = df.pop("a") + assert type(res) == DataFrame + assert len(res) == 2 + assert len(df.columns) == 1 + assert "b" in df.columns + assert "a" not in df.columns + assert len(df.index) == 2 + + def test_mixed_depth_pop(self): + arrays = [ + ["a", "top", "top", "routine1", "routine1", "routine2"], + ["", "OD", "OD", "result1", "result2", "result1"], + ["", "wx", "wy", "", "", ""], + ] + + tuples = sorted(zip(*arrays)) + index = MultiIndex.from_tuples(tuples) + df = DataFrame(np.random.default_rng(2).standard_normal((4, 6)), columns=index) + + df1 = df.copy() + df2 = df.copy() + result = df1.pop("a") + expected = df2.pop(("a", "", "")) + tm.assert_series_equal(expected, result, check_names=False) + tm.assert_frame_equal(df1, df2) + assert result.name == "a" + + expected = df1["top"] + df1 = df1.drop(["top"], axis=1) + result = df2.pop("top") + tm.assert_frame_equal(expected, result) + tm.assert_frame_equal(df1, df2) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_quantile.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_quantile.py new file mode 100644 index 0000000000000000000000000000000000000000..15af2a14a042e82dabd4a11dd9002859befba87d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_quantile.py @@ -0,0 +1,977 @@ +import numpy as np +import pytest + +from pandas._config import using_string_dtype + +import pandas as pd +from pandas import ( + DataFrame, + Index, + Series, + Timestamp, +) +import pandas._testing as tm + + +@pytest.fixture( + params=[["linear", "single"], ["nearest", "table"]], ids=lambda x: "-".join(x) +) +def interp_method(request): + """(interpolation, method) arguments for quantile""" + return request.param + + +class TestDataFrameQuantile: + @pytest.mark.parametrize( + "df,expected", + [ + [ + DataFrame( + { + 0: Series(pd.arrays.SparseArray([1, 2])), + 1: Series(pd.arrays.SparseArray([3, 4])), + } + ), + Series([1.5, 3.5], name=0.5), + ], + [ + DataFrame(Series([0.0, None, 1.0, 2.0], dtype="Sparse[float]")), + Series([1.0], name=0.5), + ], + ], + ) + def test_quantile_sparse(self, df, expected): + # GH#17198 + # GH#24600 + result = df.quantile() + expected = expected.astype("Sparse[float]") + tm.assert_series_equal(result, expected) + + def test_quantile( + self, datetime_frame, interp_method, using_array_manager, request + ): + interpolation, method = interp_method + df = datetime_frame + result = df.quantile( + 0.1, axis=0, numeric_only=True, interpolation=interpolation, method=method + ) + expected = Series( + [np.percentile(df[col], 10) for col in df.columns], + index=df.columns, + name=0.1, + ) + if interpolation == "linear": + # np.percentile values only comparable to linear interpolation + tm.assert_series_equal(result, expected) + else: + tm.assert_index_equal(result.index, expected.index) + request.applymarker( + pytest.mark.xfail( + using_array_manager, reason="Name set incorrectly for arraymanager" + ) + ) + assert result.name == expected.name + + result = df.quantile( + 0.9, axis=1, numeric_only=True, interpolation=interpolation, method=method + ) + expected = Series( + [np.percentile(df.loc[date], 90) for date in df.index], + index=df.index, + name=0.9, + ) + if interpolation == "linear": + # np.percentile values only comparable to linear interpolation + tm.assert_series_equal(result, expected) + else: + tm.assert_index_equal(result.index, expected.index) + request.applymarker( + pytest.mark.xfail( + using_array_manager, reason="Name set incorrectly for arraymanager" + ) + ) + assert result.name == expected.name + + def test_empty(self, interp_method): + interpolation, method = interp_method + q = DataFrame({"x": [], "y": []}).quantile( + 0.1, axis=0, numeric_only=True, interpolation=interpolation, method=method + ) + assert np.isnan(q["x"]) and np.isnan(q["y"]) + + def test_non_numeric_exclusion(self, interp_method, request, using_array_manager): + interpolation, method = interp_method + df = DataFrame({"col1": ["A", "A", "B", "B"], "col2": [1, 2, 3, 4]}) + rs = df.quantile( + 0.5, numeric_only=True, interpolation=interpolation, method=method + ) + xp = df.median(numeric_only=True).rename(0.5) + if interpolation == "nearest": + xp = (xp + 0.5).astype(np.int64) + if method == "table" and using_array_manager: + request.applymarker(pytest.mark.xfail(reason="Axis name incorrectly set.")) + tm.assert_series_equal(rs, xp) + + def test_axis(self, interp_method, request, using_array_manager): + # axis + interpolation, method = interp_method + df = DataFrame({"A": [1, 2, 3], "B": [2, 3, 4]}, index=[1, 2, 3]) + result = df.quantile(0.5, axis=1, interpolation=interpolation, method=method) + expected = Series([1.5, 2.5, 3.5], index=[1, 2, 3], name=0.5) + if interpolation == "nearest": + expected = expected.astype(np.int64) + if method == "table" and using_array_manager: + request.applymarker(pytest.mark.xfail(reason="Axis name incorrectly set.")) + tm.assert_series_equal(result, expected) + + result = df.quantile( + [0.5, 0.75], axis=1, interpolation=interpolation, method=method + ) + expected = DataFrame( + {1: [1.5, 1.75], 2: [2.5, 2.75], 3: [3.5, 3.75]}, index=[0.5, 0.75] + ) + if interpolation == "nearest": + expected.iloc[0, :] -= 0.5 + expected.iloc[1, :] += 0.25 + expected = expected.astype(np.int64) + tm.assert_frame_equal(result, expected, check_index_type=True) + + def test_axis_numeric_only_true(self, interp_method, request, using_array_manager): + # We may want to break API in the future to change this + # so that we exclude non-numeric along the same axis + # See GH #7312 + interpolation, method = interp_method + df = DataFrame([[1, 2, 3], ["a", "b", 4]]) + result = df.quantile( + 0.5, axis=1, numeric_only=True, interpolation=interpolation, method=method + ) + expected = Series([3.0, 4.0], index=[0, 1], name=0.5) + if interpolation == "nearest": + expected = expected.astype(np.int64) + if method == "table" and using_array_manager: + request.applymarker(pytest.mark.xfail(reason="Axis name incorrectly set.")) + tm.assert_series_equal(result, expected) + + def test_quantile_date_range(self, interp_method, request, using_array_manager): + # GH 2460 + interpolation, method = interp_method + dti = pd.date_range("2016-01-01", periods=3, tz="US/Pacific") + ser = Series(dti) + df = DataFrame(ser) + + result = df.quantile( + numeric_only=False, interpolation=interpolation, method=method + ) + expected = Series( + ["2016-01-02 00:00:00"], name=0.5, dtype="datetime64[ns, US/Pacific]" + ) + if method == "table" and using_array_manager: + request.applymarker(pytest.mark.xfail(reason="Axis name incorrectly set.")) + + tm.assert_series_equal(result, expected) + + def test_quantile_axis_mixed(self, interp_method, request, using_array_manager): + # mixed on axis=1 + interpolation, method = interp_method + df = DataFrame( + { + "A": [1, 2, 3], + "B": [2.0, 3.0, 4.0], + "C": pd.date_range("20130101", periods=3), + "D": ["foo", "bar", "baz"], + } + ) + result = df.quantile( + 0.5, axis=1, numeric_only=True, interpolation=interpolation, method=method + ) + expected = Series([1.5, 2.5, 3.5], name=0.5) + if interpolation == "nearest": + expected -= 0.5 + if method == "table" and using_array_manager: + request.applymarker(pytest.mark.xfail(reason="Axis name incorrectly set.")) + tm.assert_series_equal(result, expected) + + # must raise + msg = "'<' not supported between instances of 'Timestamp' and 'float'" + with pytest.raises(TypeError, match=msg): + df.quantile(0.5, axis=1, numeric_only=False) + + def test_quantile_axis_parameter(self, interp_method, request, using_array_manager): + # GH 9543/9544 + interpolation, method = interp_method + if method == "table" and using_array_manager: + request.applymarker(pytest.mark.xfail(reason="Axis name incorrectly set.")) + df = DataFrame({"A": [1, 2, 3], "B": [2, 3, 4]}, index=[1, 2, 3]) + + result = df.quantile(0.5, axis=0, interpolation=interpolation, method=method) + + expected = Series([2.0, 3.0], index=["A", "B"], name=0.5) + if interpolation == "nearest": + expected = expected.astype(np.int64) + tm.assert_series_equal(result, expected) + + expected = df.quantile( + 0.5, axis="index", interpolation=interpolation, method=method + ) + if interpolation == "nearest": + expected = expected.astype(np.int64) + tm.assert_series_equal(result, expected) + + result = df.quantile(0.5, axis=1, interpolation=interpolation, method=method) + + expected = Series([1.5, 2.5, 3.5], index=[1, 2, 3], name=0.5) + if interpolation == "nearest": + expected = expected.astype(np.int64) + tm.assert_series_equal(result, expected) + + result = df.quantile( + 0.5, axis="columns", interpolation=interpolation, method=method + ) + tm.assert_series_equal(result, expected) + + msg = "No axis named -1 for object type DataFrame" + with pytest.raises(ValueError, match=msg): + df.quantile(0.1, axis=-1, interpolation=interpolation, method=method) + msg = "No axis named column for object type DataFrame" + with pytest.raises(ValueError, match=msg): + df.quantile(0.1, axis="column") + + def test_quantile_interpolation(self): + # see gh-10174 + + # interpolation method other than default linear + df = DataFrame({"A": [1, 2, 3], "B": [2, 3, 4]}, index=[1, 2, 3]) + result = df.quantile(0.5, axis=1, interpolation="nearest") + expected = Series([1, 2, 3], index=[1, 2, 3], name=0.5) + tm.assert_series_equal(result, expected) + + # cross-check interpolation=nearest results in original dtype + exp = np.percentile( + np.array([[1, 2, 3], [2, 3, 4]]), + 0.5, + axis=0, + method="nearest", + ) + expected = Series(exp, index=[1, 2, 3], name=0.5, dtype="int64") + tm.assert_series_equal(result, expected) + + # float + df = DataFrame({"A": [1.0, 2.0, 3.0], "B": [2.0, 3.0, 4.0]}, index=[1, 2, 3]) + result = df.quantile(0.5, axis=1, interpolation="nearest") + expected = Series([1.0, 2.0, 3.0], index=[1, 2, 3], name=0.5) + tm.assert_series_equal(result, expected) + exp = np.percentile( + np.array([[1.0, 2.0, 3.0], [2.0, 3.0, 4.0]]), + 0.5, + axis=0, + method="nearest", + ) + expected = Series(exp, index=[1, 2, 3], name=0.5, dtype="float64") + tm.assert_series_equal(result, expected) + + # axis + result = df.quantile([0.5, 0.75], axis=1, interpolation="lower") + expected = DataFrame( + {1: [1.0, 1.0], 2: [2.0, 2.0], 3: [3.0, 3.0]}, index=[0.5, 0.75] + ) + tm.assert_frame_equal(result, expected) + + # test degenerate case + df = DataFrame({"x": [], "y": []}) + q = df.quantile(0.1, axis=0, interpolation="higher") + assert np.isnan(q["x"]) and np.isnan(q["y"]) + + # multi + df = DataFrame([[1, 1, 1], [2, 2, 2], [3, 3, 3]], columns=["a", "b", "c"]) + result = df.quantile([0.25, 0.5], interpolation="midpoint") + + # https://github.com/numpy/numpy/issues/7163 + expected = DataFrame( + [[1.5, 1.5, 1.5], [2.0, 2.0, 2.0]], + index=[0.25, 0.5], + columns=["a", "b", "c"], + ) + tm.assert_frame_equal(result, expected) + + def test_quantile_interpolation_datetime(self, datetime_frame): + # see gh-10174 + + # interpolation = linear (default case) + df = datetime_frame + q = df.quantile(0.1, axis=0, numeric_only=True, interpolation="linear") + assert q["A"] == np.percentile(df["A"], 10) + + def test_quantile_interpolation_int(self, int_frame): + # see gh-10174 + + df = int_frame + # interpolation = linear (default case) + q = df.quantile(0.1) + assert q["A"] == np.percentile(df["A"], 10) + + # test with and without interpolation keyword + q1 = df.quantile(0.1, axis=0, interpolation="linear") + assert q1["A"] == np.percentile(df["A"], 10) + tm.assert_series_equal(q, q1) + + def test_quantile_multi(self, interp_method, request, using_array_manager): + interpolation, method = interp_method + df = DataFrame([[1, 1, 1], [2, 2, 2], [3, 3, 3]], columns=["a", "b", "c"]) + result = df.quantile([0.25, 0.5], interpolation=interpolation, method=method) + expected = DataFrame( + [[1.5, 1.5, 1.5], [2.0, 2.0, 2.0]], + index=[0.25, 0.5], + columns=["a", "b", "c"], + ) + if interpolation == "nearest": + expected = expected.astype(np.int64) + if method == "table" and using_array_manager: + request.applymarker(pytest.mark.xfail(reason="Axis name incorrectly set.")) + tm.assert_frame_equal(result, expected) + + def test_quantile_multi_axis_1(self, interp_method, request, using_array_manager): + interpolation, method = interp_method + df = DataFrame([[1, 1, 1], [2, 2, 2], [3, 3, 3]], columns=["a", "b", "c"]) + result = df.quantile( + [0.25, 0.5], axis=1, interpolation=interpolation, method=method + ) + expected = DataFrame( + [[1.0, 2.0, 3.0]] * 2, index=[0.25, 0.5], columns=[0, 1, 2] + ) + if interpolation == "nearest": + expected = expected.astype(np.int64) + if method == "table" and using_array_manager: + request.applymarker(pytest.mark.xfail(reason="Axis name incorrectly set.")) + tm.assert_frame_equal(result, expected) + + def test_quantile_multi_empty(self, interp_method): + interpolation, method = interp_method + result = DataFrame({"x": [], "y": []}).quantile( + [0.1, 0.9], axis=0, interpolation=interpolation, method=method + ) + expected = DataFrame( + {"x": [np.nan, np.nan], "y": [np.nan, np.nan]}, index=[0.1, 0.9] + ) + tm.assert_frame_equal(result, expected) + + def test_quantile_datetime(self, unit): + dti = pd.to_datetime(["2010", "2011"]).as_unit(unit) + df = DataFrame({"a": dti, "b": [0, 5]}) + + # exclude datetime + result = df.quantile(0.5, numeric_only=True) + expected = Series([2.5], index=["b"], name=0.5) + tm.assert_series_equal(result, expected) + + # datetime + result = df.quantile(0.5, numeric_only=False) + expected = Series( + [Timestamp("2010-07-02 12:00:00"), 2.5], index=["a", "b"], name=0.5 + ) + tm.assert_series_equal(result, expected) + + # datetime w/ multi + result = df.quantile([0.5], numeric_only=False) + expected = DataFrame( + {"a": Timestamp("2010-07-02 12:00:00").as_unit(unit), "b": 2.5}, + index=[0.5], + ) + tm.assert_frame_equal(result, expected) + + # axis = 1 + df["c"] = pd.to_datetime(["2011", "2012"]).as_unit(unit) + result = df[["a", "c"]].quantile(0.5, axis=1, numeric_only=False) + expected = Series( + [Timestamp("2010-07-02 12:00:00"), Timestamp("2011-07-02 12:00:00")], + index=[0, 1], + name=0.5, + dtype=f"M8[{unit}]", + ) + tm.assert_series_equal(result, expected) + + result = df[["a", "c"]].quantile([0.5], axis=1, numeric_only=False) + expected = DataFrame( + [[Timestamp("2010-07-02 12:00:00"), Timestamp("2011-07-02 12:00:00")]], + index=[0.5], + columns=[0, 1], + dtype=f"M8[{unit}]", + ) + tm.assert_frame_equal(result, expected) + + # empty when numeric_only=True + result = df[["a", "c"]].quantile(0.5, numeric_only=True) + expected = Series([], index=[], dtype=np.float64, name=0.5) + tm.assert_series_equal(result, expected) + + result = df[["a", "c"]].quantile([0.5], numeric_only=True) + expected = DataFrame(index=[0.5], columns=[]) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "dtype", + [ + "datetime64[ns]", + "datetime64[ns, US/Pacific]", + "timedelta64[ns]", + "Period[D]", + ], + ) + def test_quantile_dt64_empty(self, dtype, interp_method): + # GH#41544 + interpolation, method = interp_method + df = DataFrame(columns=["a", "b"], dtype=dtype) + + res = df.quantile( + 0.5, axis=1, numeric_only=False, interpolation=interpolation, method=method + ) + expected = Series([], index=[], name=0.5, dtype=dtype) + tm.assert_series_equal(res, expected) + + # no columns in result, so no dtype preservation + res = df.quantile( + [0.5], + axis=1, + numeric_only=False, + interpolation=interpolation, + method=method, + ) + expected = DataFrame(index=[0.5], columns=[]) + tm.assert_frame_equal(res, expected) + + @pytest.mark.parametrize("invalid", [-1, 2, [0.5, -1], [0.5, 2]]) + def test_quantile_invalid(self, invalid, datetime_frame, interp_method): + msg = "percentiles should all be in the interval \\[0, 1\\]" + interpolation, method = interp_method + with pytest.raises(ValueError, match=msg): + datetime_frame.quantile(invalid, interpolation=interpolation, method=method) + + def test_quantile_box(self, interp_method, request, using_array_manager): + interpolation, method = interp_method + if method == "table" and using_array_manager: + request.applymarker(pytest.mark.xfail(reason="Axis name incorrectly set.")) + df = DataFrame( + { + "A": [ + Timestamp("2011-01-01"), + Timestamp("2011-01-02"), + Timestamp("2011-01-03"), + ], + "B": [ + Timestamp("2011-01-01", tz="US/Eastern"), + Timestamp("2011-01-02", tz="US/Eastern"), + Timestamp("2011-01-03", tz="US/Eastern"), + ], + "C": [ + pd.Timedelta("1 days"), + pd.Timedelta("2 days"), + pd.Timedelta("3 days"), + ], + } + ) + + res = df.quantile( + 0.5, numeric_only=False, interpolation=interpolation, method=method + ) + + exp = Series( + [ + Timestamp("2011-01-02"), + Timestamp("2011-01-02", tz="US/Eastern"), + pd.Timedelta("2 days"), + ], + name=0.5, + index=["A", "B", "C"], + ) + tm.assert_series_equal(res, exp) + + res = df.quantile( + [0.5], numeric_only=False, interpolation=interpolation, method=method + ) + exp = DataFrame( + [ + [ + Timestamp("2011-01-02"), + Timestamp("2011-01-02", tz="US/Eastern"), + pd.Timedelta("2 days"), + ] + ], + index=[0.5], + columns=["A", "B", "C"], + ) + tm.assert_frame_equal(res, exp) + + def test_quantile_box_nat(self): + # DatetimeLikeBlock may be consolidated and contain NaT in different loc + df = DataFrame( + { + "A": [ + Timestamp("2011-01-01"), + pd.NaT, + Timestamp("2011-01-02"), + Timestamp("2011-01-03"), + ], + "a": [ + Timestamp("2011-01-01"), + Timestamp("2011-01-02"), + pd.NaT, + Timestamp("2011-01-03"), + ], + "B": [ + Timestamp("2011-01-01", tz="US/Eastern"), + pd.NaT, + Timestamp("2011-01-02", tz="US/Eastern"), + Timestamp("2011-01-03", tz="US/Eastern"), + ], + "b": [ + Timestamp("2011-01-01", tz="US/Eastern"), + Timestamp("2011-01-02", tz="US/Eastern"), + pd.NaT, + Timestamp("2011-01-03", tz="US/Eastern"), + ], + "C": [ + pd.Timedelta("1 days"), + pd.Timedelta("2 days"), + pd.Timedelta("3 days"), + pd.NaT, + ], + "c": [ + pd.NaT, + pd.Timedelta("1 days"), + pd.Timedelta("2 days"), + pd.Timedelta("3 days"), + ], + }, + columns=list("AaBbCc"), + ) + + res = df.quantile(0.5, numeric_only=False) + exp = Series( + [ + Timestamp("2011-01-02"), + Timestamp("2011-01-02"), + Timestamp("2011-01-02", tz="US/Eastern"), + Timestamp("2011-01-02", tz="US/Eastern"), + pd.Timedelta("2 days"), + pd.Timedelta("2 days"), + ], + name=0.5, + index=list("AaBbCc"), + ) + tm.assert_series_equal(res, exp) + + res = df.quantile([0.5], numeric_only=False) + exp = DataFrame( + [ + [ + Timestamp("2011-01-02"), + Timestamp("2011-01-02"), + Timestamp("2011-01-02", tz="US/Eastern"), + Timestamp("2011-01-02", tz="US/Eastern"), + pd.Timedelta("2 days"), + pd.Timedelta("2 days"), + ] + ], + index=[0.5], + columns=list("AaBbCc"), + ) + tm.assert_frame_equal(res, exp) + + def test_quantile_nan(self, interp_method, request, using_array_manager): + interpolation, method = interp_method + if method == "table" and using_array_manager: + request.applymarker(pytest.mark.xfail(reason="Axis name incorrectly set.")) + # GH 14357 - float block where some cols have missing values + df = DataFrame({"a": np.arange(1, 6.0), "b": np.arange(1, 6.0)}) + df.iloc[-1, 1] = np.nan + + res = df.quantile(0.5, interpolation=interpolation, method=method) + exp = Series( + [3.0, 2.5 if interpolation == "linear" else 3.0], index=["a", "b"], name=0.5 + ) + tm.assert_series_equal(res, exp) + + res = df.quantile([0.5, 0.75], interpolation=interpolation, method=method) + exp = DataFrame( + { + "a": [3.0, 4.0], + "b": [2.5, 3.25] if interpolation == "linear" else [3.0, 4.0], + }, + index=[0.5, 0.75], + ) + tm.assert_frame_equal(res, exp) + + res = df.quantile(0.5, axis=1, interpolation=interpolation, method=method) + exp = Series(np.arange(1.0, 6.0), name=0.5) + tm.assert_series_equal(res, exp) + + res = df.quantile( + [0.5, 0.75], axis=1, interpolation=interpolation, method=method + ) + exp = DataFrame([np.arange(1.0, 6.0)] * 2, index=[0.5, 0.75]) + if interpolation == "nearest": + exp.iloc[1, -1] = np.nan + tm.assert_frame_equal(res, exp) + + # full-nan column + df["b"] = np.nan + + res = df.quantile(0.5, interpolation=interpolation, method=method) + exp = Series([3.0, np.nan], index=["a", "b"], name=0.5) + tm.assert_series_equal(res, exp) + + res = df.quantile([0.5, 0.75], interpolation=interpolation, method=method) + exp = DataFrame({"a": [3.0, 4.0], "b": [np.nan, np.nan]}, index=[0.5, 0.75]) + tm.assert_frame_equal(res, exp) + + def test_quantile_nat(self, interp_method, request, using_array_manager, unit): + interpolation, method = interp_method + if method == "table" and using_array_manager: + request.applymarker(pytest.mark.xfail(reason="Axis name incorrectly set.")) + # full NaT column + df = DataFrame({"a": [pd.NaT, pd.NaT, pd.NaT]}, dtype=f"M8[{unit}]") + + res = df.quantile( + 0.5, numeric_only=False, interpolation=interpolation, method=method + ) + exp = Series([pd.NaT], index=["a"], name=0.5, dtype=f"M8[{unit}]") + tm.assert_series_equal(res, exp) + + res = df.quantile( + [0.5], numeric_only=False, interpolation=interpolation, method=method + ) + exp = DataFrame({"a": [pd.NaT]}, index=[0.5], dtype=f"M8[{unit}]") + tm.assert_frame_equal(res, exp) + + # mixed non-null / full null column + df = DataFrame( + { + "a": [ + Timestamp("2012-01-01"), + Timestamp("2012-01-02"), + Timestamp("2012-01-03"), + ], + "b": [pd.NaT, pd.NaT, pd.NaT], + }, + dtype=f"M8[{unit}]", + ) + + res = df.quantile( + 0.5, numeric_only=False, interpolation=interpolation, method=method + ) + exp = Series( + [Timestamp("2012-01-02"), pd.NaT], + index=["a", "b"], + name=0.5, + dtype=f"M8[{unit}]", + ) + tm.assert_series_equal(res, exp) + + res = df.quantile( + [0.5], numeric_only=False, interpolation=interpolation, method=method + ) + exp = DataFrame( + [[Timestamp("2012-01-02"), pd.NaT]], + index=[0.5], + columns=["a", "b"], + dtype=f"M8[{unit}]", + ) + tm.assert_frame_equal(res, exp) + + def test_quantile_empty_no_rows_floats(self, interp_method): + interpolation, method = interp_method + + df = DataFrame(columns=["a", "b"], dtype="float64") + + res = df.quantile(0.5, interpolation=interpolation, method=method) + exp = Series([np.nan, np.nan], index=["a", "b"], name=0.5) + tm.assert_series_equal(res, exp) + + res = df.quantile([0.5], interpolation=interpolation, method=method) + exp = DataFrame([[np.nan, np.nan]], columns=["a", "b"], index=[0.5]) + tm.assert_frame_equal(res, exp) + + res = df.quantile(0.5, axis=1, interpolation=interpolation, method=method) + exp = Series([], index=[], dtype="float64", name=0.5) + tm.assert_series_equal(res, exp) + + res = df.quantile([0.5], axis=1, interpolation=interpolation, method=method) + exp = DataFrame(columns=[], index=[0.5]) + tm.assert_frame_equal(res, exp) + + def test_quantile_empty_no_rows_ints(self, interp_method): + interpolation, method = interp_method + df = DataFrame(columns=["a", "b"], dtype="int64") + + res = df.quantile(0.5, interpolation=interpolation, method=method) + exp = Series([np.nan, np.nan], index=["a", "b"], name=0.5) + tm.assert_series_equal(res, exp) + + def test_quantile_empty_no_rows_dt64(self, interp_method): + interpolation, method = interp_method + # datetimes + df = DataFrame(columns=["a", "b"], dtype="datetime64[ns]") + + res = df.quantile( + 0.5, numeric_only=False, interpolation=interpolation, method=method + ) + exp = Series( + [pd.NaT, pd.NaT], index=["a", "b"], dtype="datetime64[ns]", name=0.5 + ) + tm.assert_series_equal(res, exp) + + # Mixed dt64/dt64tz + df["a"] = df["a"].dt.tz_localize("US/Central") + res = df.quantile( + 0.5, numeric_only=False, interpolation=interpolation, method=method + ) + exp = exp.astype(object) + if interpolation == "nearest": + # GH#18463 TODO: would we prefer NaTs here? + msg = "The 'downcast' keyword in fillna is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + exp = exp.fillna(np.nan, downcast=False) + tm.assert_series_equal(res, exp) + + # both dt64tz + df["b"] = df["b"].dt.tz_localize("US/Central") + res = df.quantile( + 0.5, numeric_only=False, interpolation=interpolation, method=method + ) + exp = exp.astype(df["b"].dtype) + tm.assert_series_equal(res, exp) + + def test_quantile_empty_no_columns(self, interp_method): + # GH#23925 _get_numeric_data may drop all columns + interpolation, method = interp_method + df = DataFrame(pd.date_range("1/1/18", periods=5)) + df.columns.name = "captain tightpants" + result = df.quantile( + 0.5, numeric_only=True, interpolation=interpolation, method=method + ) + expected = Series([], index=[], name=0.5, dtype=np.float64) + expected.index.name = "captain tightpants" + tm.assert_series_equal(result, expected) + + result = df.quantile( + [0.5], numeric_only=True, interpolation=interpolation, method=method + ) + expected = DataFrame([], index=[0.5], columns=[]) + expected.columns.name = "captain tightpants" + tm.assert_frame_equal(result, expected) + + def test_quantile_item_cache( + self, using_array_manager, interp_method, using_copy_on_write + ): + # previous behavior incorrect retained an invalid _item_cache entry + interpolation, method = interp_method + df = DataFrame( + np.random.default_rng(2).standard_normal((4, 3)), columns=["A", "B", "C"] + ) + df["D"] = df["A"] * 2 + ser = df["A"] + if not using_array_manager: + assert len(df._mgr.blocks) == 2 + + df.quantile(numeric_only=False, interpolation=interpolation, method=method) + + if using_copy_on_write: + ser.iloc[0] = 99 + assert df.iloc[0, 0] == df["A"][0] + assert df.iloc[0, 0] != 99 + else: + ser.values[0] = 99 + assert df.iloc[0, 0] == df["A"][0] + assert df.iloc[0, 0] == 99 + + def test_invalid_method(self): + with pytest.raises(ValueError, match="Invalid method: foo"): + DataFrame(range(1)).quantile(0.5, method="foo") + + def test_table_invalid_interpolation(self): + with pytest.raises(ValueError, match="Invalid interpolation: foo"): + DataFrame(range(1)).quantile(0.5, method="table", interpolation="foo") + + +class TestQuantileExtensionDtype: + # TODO: tests for axis=1? + # TODO: empty case? + + @pytest.fixture( + params=[ + pytest.param( + pd.IntervalIndex.from_breaks(range(10)), + marks=pytest.mark.xfail(reason="raises when trying to add Intervals"), + ), + pd.period_range("2016-01-01", periods=9, freq="D"), + pd.date_range("2016-01-01", periods=9, tz="US/Pacific"), + pd.timedelta_range("1 Day", periods=9), + pd.array(np.arange(9), dtype="Int64"), + pd.array(np.arange(9), dtype="Float64"), + ], + ids=lambda x: str(x.dtype), + ) + def index(self, request): + # NB: not actually an Index object + idx = request.param + idx.name = "A" + return idx + + @pytest.fixture + def obj(self, index, frame_or_series): + # bc index is not always an Index (yet), we need to re-patch .name + obj = frame_or_series(index).copy() + + if frame_or_series is Series: + obj.name = "A" + else: + obj.columns = ["A"] + return obj + + def compute_quantile(self, obj, qs): + if isinstance(obj, Series): + result = obj.quantile(qs) + else: + result = obj.quantile(qs, numeric_only=False) + return result + + def test_quantile_ea(self, request, obj, index): + # result should be invariant to shuffling + indexer = np.arange(len(index), dtype=np.intp) + np.random.default_rng(2).shuffle(indexer) + obj = obj.iloc[indexer] + + qs = [0.5, 0, 1] + result = self.compute_quantile(obj, qs) + + exp_dtype = index.dtype + if index.dtype == "Int64": + # match non-nullable casting behavior + exp_dtype = "Float64" + + # expected here assumes len(index) == 9 + expected = Series( + [index[4], index[0], index[-1]], dtype=exp_dtype, index=qs, name="A" + ) + expected = type(obj)(expected) + + tm.assert_equal(result, expected) + + def test_quantile_ea_with_na(self, obj, index): + obj.iloc[0] = index._na_value + obj.iloc[-1] = index._na_value + + # result should be invariant to shuffling + indexer = np.arange(len(index), dtype=np.intp) + np.random.default_rng(2).shuffle(indexer) + obj = obj.iloc[indexer] + + qs = [0.5, 0, 1] + result = self.compute_quantile(obj, qs) + + # expected here assumes len(index) == 9 + expected = Series( + [index[4], index[1], index[-2]], dtype=index.dtype, index=qs, name="A" + ) + expected = type(obj)(expected) + tm.assert_equal(result, expected) + + def test_quantile_ea_all_na(self, request, obj, index): + obj.iloc[:] = index._na_value + # Check dtypes were preserved; this was once a problem see GH#39763 + assert np.all(obj.dtypes == index.dtype) + + # result should be invariant to shuffling + indexer = np.arange(len(index), dtype=np.intp) + np.random.default_rng(2).shuffle(indexer) + obj = obj.iloc[indexer] + + qs = [0.5, 0, 1] + result = self.compute_quantile(obj, qs) + + expected = index.take([-1, -1, -1], allow_fill=True, fill_value=index._na_value) + expected = Series(expected, index=qs, name="A") + expected = type(obj)(expected) + tm.assert_equal(result, expected) + + def test_quantile_ea_scalar(self, request, obj, index): + # scalar qs + + # result should be invariant to shuffling + indexer = np.arange(len(index), dtype=np.intp) + np.random.default_rng(2).shuffle(indexer) + obj = obj.iloc[indexer] + + qs = 0.5 + result = self.compute_quantile(obj, qs) + + exp_dtype = index.dtype + if index.dtype == "Int64": + exp_dtype = "Float64" + + expected = Series({"A": index[4]}, dtype=exp_dtype, name=0.5) + if isinstance(obj, Series): + expected = expected["A"] + assert result == expected + else: + tm.assert_series_equal(result, expected) + + @pytest.mark.xfail(using_string_dtype(), reason="TODO(infer_string)", strict=False) + @pytest.mark.parametrize( + "dtype, expected_data, expected_index, axis", + [ + ["float64", [], [], 1], + ["int64", [], [], 1], + ["float64", [np.nan, np.nan], ["a", "b"], 0], + ["int64", [np.nan, np.nan], ["a", "b"], 0], + ], + ) + def test_empty_numeric(self, dtype, expected_data, expected_index, axis): + # GH 14564 + df = DataFrame(columns=["a", "b"], dtype=dtype) + result = df.quantile(0.5, axis=axis) + expected = Series( + expected_data, name=0.5, index=Index(expected_index), dtype="float64" + ) + tm.assert_series_equal(result, expected) + + @pytest.mark.xfail(using_string_dtype(), reason="TODO(infer_string)", strict=False) + @pytest.mark.parametrize( + "dtype, expected_data, expected_index, axis, expected_dtype", + [ + ["datetime64[ns]", [], [], 1, "datetime64[ns]"], + ["datetime64[ns]", [pd.NaT, pd.NaT], ["a", "b"], 0, "datetime64[ns]"], + ], + ) + def test_empty_datelike( + self, dtype, expected_data, expected_index, axis, expected_dtype + ): + # GH 14564 + df = DataFrame(columns=["a", "b"], dtype=dtype) + result = df.quantile(0.5, axis=axis, numeric_only=False) + expected = Series( + expected_data, name=0.5, index=Index(expected_index), dtype=expected_dtype + ) + tm.assert_series_equal(result, expected) + + @pytest.mark.xfail(using_string_dtype(), reason="TODO(infer_string)", strict=False) + @pytest.mark.parametrize( + "expected_data, expected_index, axis", + [ + [[np.nan, np.nan], range(2), 1], + [[], [], 0], + ], + ) + def test_datelike_numeric_only(self, expected_data, expected_index, axis): + # GH 14564 + df = DataFrame( + { + "a": pd.to_datetime(["2010", "2011"]), + "b": [0, 5], + "c": pd.to_datetime(["2011", "2012"]), + } + ) + result = df[["a", "c"]].quantile(0.5, axis=axis, numeric_only=True) + expected = Series( + expected_data, name=0.5, index=Index(expected_index), dtype=np.float64 + ) + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_rank.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_rank.py new file mode 100644 index 0000000000000000000000000000000000000000..37bed2da0574305977dece25ce02771c4364d1de --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_rank.py @@ -0,0 +1,507 @@ +from datetime import ( + datetime, + timedelta, +) + +import numpy as np +import pytest + +from pandas._libs.algos import ( + Infinity, + NegInfinity, +) + +from pandas import ( + DataFrame, + Index, + Series, +) +import pandas._testing as tm + + +class TestRank: + s = Series([1, 3, 4, 2, np.nan, 2, 1, 5, np.nan, 3]) + df = DataFrame({"A": s, "B": s}) + + results = { + "average": np.array([1.5, 5.5, 7.0, 3.5, np.nan, 3.5, 1.5, 8.0, np.nan, 5.5]), + "min": np.array([1, 5, 7, 3, np.nan, 3, 1, 8, np.nan, 5]), + "max": np.array([2, 6, 7, 4, np.nan, 4, 2, 8, np.nan, 6]), + "first": np.array([1, 5, 7, 3, np.nan, 4, 2, 8, np.nan, 6]), + "dense": np.array([1, 3, 4, 2, np.nan, 2, 1, 5, np.nan, 3]), + } + + @pytest.fixture(params=["average", "min", "max", "first", "dense"]) + def method(self, request): + """ + Fixture for trying all rank methods + """ + return request.param + + def test_rank(self, float_frame): + sp_stats = pytest.importorskip("scipy.stats") + + float_frame.loc[::2, "A"] = np.nan + float_frame.loc[::3, "B"] = np.nan + float_frame.loc[::4, "C"] = np.nan + float_frame.loc[::5, "D"] = np.nan + + ranks0 = float_frame.rank() + ranks1 = float_frame.rank(1) + mask = np.isnan(float_frame.values) + + fvals = float_frame.fillna(np.inf).values + + exp0 = np.apply_along_axis(sp_stats.rankdata, 0, fvals) + exp0[mask] = np.nan + + exp1 = np.apply_along_axis(sp_stats.rankdata, 1, fvals) + exp1[mask] = np.nan + + tm.assert_almost_equal(ranks0.values, exp0) + tm.assert_almost_equal(ranks1.values, exp1) + + # integers + df = DataFrame( + np.random.default_rng(2).integers(0, 5, size=40).reshape((10, 4)) + ) + + result = df.rank() + exp = df.astype(float).rank() + tm.assert_frame_equal(result, exp) + + result = df.rank(1) + exp = df.astype(float).rank(1) + tm.assert_frame_equal(result, exp) + + def test_rank2(self): + df = DataFrame([[1, 3, 2], [1, 2, 3]]) + expected = DataFrame([[1.0, 3.0, 2.0], [1, 2, 3]]) / 3.0 + result = df.rank(1, pct=True) + tm.assert_frame_equal(result, expected) + + df = DataFrame([[1, 3, 2], [1, 2, 3]]) + expected = df.rank(0) / 2.0 + result = df.rank(0, pct=True) + tm.assert_frame_equal(result, expected) + + df = DataFrame([["b", "c", "a"], ["a", "c", "b"]]) + expected = DataFrame([[2.0, 3.0, 1.0], [1, 3, 2]]) + result = df.rank(1, numeric_only=False) + tm.assert_frame_equal(result, expected) + + expected = DataFrame([[2.0, 1.5, 1.0], [1, 1.5, 2]]) + result = df.rank(0, numeric_only=False) + tm.assert_frame_equal(result, expected) + + df = DataFrame([["b", np.nan, "a"], ["a", "c", "b"]]) + expected = DataFrame([[2.0, np.nan, 1.0], [1.0, 3.0, 2.0]]) + result = df.rank(1, numeric_only=False) + tm.assert_frame_equal(result, expected) + + expected = DataFrame([[2.0, np.nan, 1.0], [1.0, 1.0, 2.0]]) + result = df.rank(0, numeric_only=False) + tm.assert_frame_equal(result, expected) + + # f7u12, this does not work without extensive workaround + data = [ + [datetime(2001, 1, 5), np.nan, datetime(2001, 1, 2)], + [datetime(2000, 1, 2), datetime(2000, 1, 3), datetime(2000, 1, 1)], + ] + df = DataFrame(data) + + # check the rank + expected = DataFrame([[2.0, np.nan, 1.0], [2.0, 3.0, 1.0]]) + result = df.rank(1, numeric_only=False, ascending=True) + tm.assert_frame_equal(result, expected) + + expected = DataFrame([[1.0, np.nan, 2.0], [2.0, 1.0, 3.0]]) + result = df.rank(1, numeric_only=False, ascending=False) + tm.assert_frame_equal(result, expected) + + df = DataFrame({"a": [1e-20, -5, 1e-20 + 1e-40, 10, 1e60, 1e80, 1e-30]}) + exp = DataFrame({"a": [3.5, 1.0, 3.5, 5.0, 6.0, 7.0, 2.0]}) + tm.assert_frame_equal(df.rank(), exp) + + def test_rank_does_not_mutate(self): + # GH#18521 + # Check rank does not mutate DataFrame + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 3)), dtype="float64" + ) + expected = df.copy() + df.rank() + result = df + tm.assert_frame_equal(result, expected) + + def test_rank_mixed_frame(self, float_string_frame): + float_string_frame["datetime"] = datetime.now() + float_string_frame["timedelta"] = timedelta(days=1, seconds=1) + + float_string_frame.rank(numeric_only=False) + with pytest.raises(TypeError, match="not supported between instances of"): + float_string_frame.rank(axis=1) + + def test_rank_na_option(self, float_frame): + sp_stats = pytest.importorskip("scipy.stats") + + float_frame.loc[::2, "A"] = np.nan + float_frame.loc[::3, "B"] = np.nan + float_frame.loc[::4, "C"] = np.nan + float_frame.loc[::5, "D"] = np.nan + + # bottom + ranks0 = float_frame.rank(na_option="bottom") + ranks1 = float_frame.rank(1, na_option="bottom") + + fvals = float_frame.fillna(np.inf).values + + exp0 = np.apply_along_axis(sp_stats.rankdata, 0, fvals) + exp1 = np.apply_along_axis(sp_stats.rankdata, 1, fvals) + + tm.assert_almost_equal(ranks0.values, exp0) + tm.assert_almost_equal(ranks1.values, exp1) + + # top + ranks0 = float_frame.rank(na_option="top") + ranks1 = float_frame.rank(1, na_option="top") + + fval0 = float_frame.fillna((float_frame.min() - 1).to_dict()).values + fval1 = float_frame.T + fval1 = fval1.fillna((fval1.min() - 1).to_dict()).T + fval1 = fval1.fillna(np.inf).values + + exp0 = np.apply_along_axis(sp_stats.rankdata, 0, fval0) + exp1 = np.apply_along_axis(sp_stats.rankdata, 1, fval1) + + tm.assert_almost_equal(ranks0.values, exp0) + tm.assert_almost_equal(ranks1.values, exp1) + + # descending + + # bottom + ranks0 = float_frame.rank(na_option="top", ascending=False) + ranks1 = float_frame.rank(1, na_option="top", ascending=False) + + fvals = float_frame.fillna(np.inf).values + + exp0 = np.apply_along_axis(sp_stats.rankdata, 0, -fvals) + exp1 = np.apply_along_axis(sp_stats.rankdata, 1, -fvals) + + tm.assert_almost_equal(ranks0.values, exp0) + tm.assert_almost_equal(ranks1.values, exp1) + + # descending + + # top + ranks0 = float_frame.rank(na_option="bottom", ascending=False) + ranks1 = float_frame.rank(1, na_option="bottom", ascending=False) + + fval0 = float_frame.fillna((float_frame.min() - 1).to_dict()).values + fval1 = float_frame.T + fval1 = fval1.fillna((fval1.min() - 1).to_dict()).T + fval1 = fval1.fillna(np.inf).values + + exp0 = np.apply_along_axis(sp_stats.rankdata, 0, -fval0) + exp1 = np.apply_along_axis(sp_stats.rankdata, 1, -fval1) + + tm.assert_numpy_array_equal(ranks0.values, exp0) + tm.assert_numpy_array_equal(ranks1.values, exp1) + + # bad values throw error + msg = "na_option must be one of 'keep', 'top', or 'bottom'" + + with pytest.raises(ValueError, match=msg): + float_frame.rank(na_option="bad", ascending=False) + + # invalid type + with pytest.raises(ValueError, match=msg): + float_frame.rank(na_option=True, ascending=False) + + def test_rank_axis(self): + # check if using axes' names gives the same result + df = DataFrame([[2, 1], [4, 3]]) + tm.assert_frame_equal(df.rank(axis=0), df.rank(axis="index")) + tm.assert_frame_equal(df.rank(axis=1), df.rank(axis="columns")) + + @pytest.mark.parametrize("ax", [0, 1]) + @pytest.mark.parametrize("m", ["average", "min", "max", "first", "dense"]) + def test_rank_methods_frame(self, ax, m): + sp_stats = pytest.importorskip("scipy.stats") + + xs = np.random.default_rng(2).integers(0, 21, (100, 26)) + xs = (xs - 10.0) / 10.0 + cols = [chr(ord("z") - i) for i in range(xs.shape[1])] + + for vals in [xs, xs + 1e6, xs * 1e-6]: + df = DataFrame(vals, columns=cols) + + result = df.rank(axis=ax, method=m) + sprank = np.apply_along_axis( + sp_stats.rankdata, ax, vals, m if m != "first" else "ordinal" + ) + sprank = sprank.astype(np.float64) + expected = DataFrame(sprank, columns=cols).astype("float64") + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("dtype", ["O", "f8", "i8"]) + def test_rank_descending(self, method, dtype): + if "i" in dtype: + df = self.df.dropna().astype(dtype) + else: + df = self.df.astype(dtype) + + res = df.rank(ascending=False) + expected = (df.max() - df).rank() + tm.assert_frame_equal(res, expected) + + expected = (df.max() - df).rank(method=method) + + if dtype != "O": + res2 = df.rank(method=method, ascending=False, numeric_only=True) + tm.assert_frame_equal(res2, expected) + + res3 = df.rank(method=method, ascending=False, numeric_only=False) + tm.assert_frame_equal(res3, expected) + + @pytest.mark.parametrize("axis", [0, 1]) + @pytest.mark.parametrize("dtype", [None, object]) + def test_rank_2d_tie_methods(self, method, axis, dtype): + df = self.df + + def _check2d(df, expected, method="average", axis=0): + exp_df = DataFrame({"A": expected, "B": expected}) + + if axis == 1: + df = df.T + exp_df = exp_df.T + + result = df.rank(method=method, axis=axis) + tm.assert_frame_equal(result, exp_df) + + frame = df if dtype is None else df.astype(dtype) + _check2d(frame, self.results[method], method=method, axis=axis) + + @pytest.mark.parametrize( + "method,exp", + [ + ("dense", [[1.0, 1.0, 1.0], [1.0, 0.5, 2.0 / 3], [1.0, 0.5, 1.0 / 3]]), + ( + "min", + [ + [1.0 / 3, 1.0, 1.0], + [1.0 / 3, 1.0 / 3, 2.0 / 3], + [1.0 / 3, 1.0 / 3, 1.0 / 3], + ], + ), + ( + "max", + [[1.0, 1.0, 1.0], [1.0, 2.0 / 3, 2.0 / 3], [1.0, 2.0 / 3, 1.0 / 3]], + ), + ( + "average", + [[2.0 / 3, 1.0, 1.0], [2.0 / 3, 0.5, 2.0 / 3], [2.0 / 3, 0.5, 1.0 / 3]], + ), + ( + "first", + [ + [1.0 / 3, 1.0, 1.0], + [2.0 / 3, 1.0 / 3, 2.0 / 3], + [3.0 / 3, 2.0 / 3, 1.0 / 3], + ], + ), + ], + ) + def test_rank_pct_true(self, method, exp): + # see gh-15630. + + df = DataFrame([[2012, 66, 3], [2012, 65, 2], [2012, 65, 1]]) + result = df.rank(method=method, pct=True) + + expected = DataFrame(exp) + tm.assert_frame_equal(result, expected) + + @pytest.mark.single_cpu + def test_pct_max_many_rows(self): + # GH 18271 + df = DataFrame( + {"A": np.arange(2**24 + 1), "B": np.arange(2**24 + 1, 0, -1)} + ) + result = df.rank(pct=True).max() + assert (result == 1).all() + + @pytest.mark.parametrize( + "contents,dtype", + [ + ( + [ + -np.inf, + -50, + -1, + -1e-20, + -1e-25, + -1e-50, + 0, + 1e-40, + 1e-20, + 1e-10, + 2, + 40, + np.inf, + ], + "float64", + ), + ( + [ + -np.inf, + -50, + -1, + -1e-20, + -1e-25, + -1e-45, + 0, + 1e-40, + 1e-20, + 1e-10, + 2, + 40, + np.inf, + ], + "float32", + ), + ([np.iinfo(np.uint8).min, 1, 2, 100, np.iinfo(np.uint8).max], "uint8"), + ( + [ + np.iinfo(np.int64).min, + -100, + 0, + 1, + 9999, + 100000, + 1e10, + np.iinfo(np.int64).max, + ], + "int64", + ), + ([NegInfinity(), "1", "A", "BA", "Ba", "C", Infinity()], "object"), + ( + [datetime(2001, 1, 1), datetime(2001, 1, 2), datetime(2001, 1, 5)], + "datetime64", + ), + ], + ) + def test_rank_inf_and_nan(self, contents, dtype, frame_or_series): + dtype_na_map = { + "float64": np.nan, + "float32": np.nan, + "object": None, + "datetime64": np.datetime64("nat"), + } + # Insert nans at random positions if underlying dtype has missing + # value. Then adjust the expected order by adding nans accordingly + # This is for testing whether rank calculation is affected + # when values are interwined with nan values. + values = np.array(contents, dtype=dtype) + exp_order = np.array(range(len(values)), dtype="float64") + 1.0 + if dtype in dtype_na_map: + na_value = dtype_na_map[dtype] + nan_indices = np.random.default_rng(2).choice(range(len(values)), 5) + values = np.insert(values, nan_indices, na_value) + exp_order = np.insert(exp_order, nan_indices, np.nan) + + # Shuffle the testing array and expected results in the same way + random_order = np.random.default_rng(2).permutation(len(values)) + obj = frame_or_series(values[random_order]) + expected = frame_or_series(exp_order[random_order], dtype="float64") + result = obj.rank() + tm.assert_equal(result, expected) + + def test_df_series_inf_nan_consistency(self): + # GH#32593 + index = [5, 4, 3, 2, 1, 6, 7, 8, 9, 10] + col1 = [5, 4, 3, 5, 8, 5, 2, 1, 6, 6] + col2 = [5, 4, np.nan, 5, 8, 5, np.inf, np.nan, 6, -np.inf] + df = DataFrame( + data={ + "col1": col1, + "col2": col2, + }, + index=index, + dtype="f8", + ) + df_result = df.rank() + + series_result = df.copy() + series_result["col1"] = df["col1"].rank() + series_result["col2"] = df["col2"].rank() + + tm.assert_frame_equal(df_result, series_result) + + def test_rank_both_inf(self): + # GH#32593 + df = DataFrame({"a": [-np.inf, 0, np.inf]}) + expected = DataFrame({"a": [1.0, 2.0, 3.0]}) + result = df.rank() + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "na_option,ascending,expected", + [ + ("top", True, [3.0, 1.0, 2.0]), + ("top", False, [2.0, 1.0, 3.0]), + ("bottom", True, [2.0, 3.0, 1.0]), + ("bottom", False, [1.0, 3.0, 2.0]), + ], + ) + def test_rank_inf_nans_na_option( + self, frame_or_series, method, na_option, ascending, expected + ): + obj = frame_or_series([np.inf, np.nan, -np.inf]) + result = obj.rank(method=method, na_option=na_option, ascending=ascending) + expected = frame_or_series(expected) + tm.assert_equal(result, expected) + + @pytest.mark.parametrize( + "na_option,ascending,expected", + [ + ("bottom", True, [1.0, 2.0, 4.0, 3.0]), + ("bottom", False, [1.0, 2.0, 4.0, 3.0]), + ("top", True, [2.0, 3.0, 1.0, 4.0]), + ("top", False, [2.0, 3.0, 1.0, 4.0]), + ], + ) + def test_rank_object_first(self, frame_or_series, na_option, ascending, expected): + obj = frame_or_series(["foo", "foo", None, "foo"]) + result = obj.rank(method="first", na_option=na_option, ascending=ascending) + expected = frame_or_series(expected) + tm.assert_equal(result, expected) + + @pytest.mark.parametrize( + "data,expected", + [ + ( + {"a": [1, 2, "a"], "b": [4, 5, 6]}, + DataFrame({"b": [1.0, 2.0, 3.0]}, columns=Index(["b"], dtype=object)), + ), + ({"a": [1, 2, "a"]}, DataFrame(index=range(3), columns=[])), + ], + ) + def test_rank_mixed_axis_zero(self, data, expected): + df = DataFrame(data, columns=Index(list(data.keys()), dtype=object)) + with pytest.raises(TypeError, match="'<' not supported between instances of"): + df.rank() + result = df.rank(numeric_only=True) + tm.assert_frame_equal(result, expected) + + def test_rank_string_dtype(self, string_dtype_no_object): + # GH#55362 + obj = Series(["foo", "foo", None, "foo"], dtype=string_dtype_no_object) + result = obj.rank(method="first") + exp_dtype = ( + "Float64" if string_dtype_no_object == "string[pyarrow]" else "float64" + ) + if string_dtype_no_object.storage == "python": + # TODO nullable string[python] should also return nullable Int64 + exp_dtype = "float64" + expected = Series([1, 2, None, 3], dtype=exp_dtype) + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_reindex.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_reindex.py new file mode 100644 index 0000000000000000000000000000000000000000..d862e14ce86cbc2bc0e74e5e9bd768c2f2eb285c --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_reindex.py @@ -0,0 +1,1327 @@ +from datetime import ( + datetime, + timedelta, +) +import inspect + +import numpy as np +import pytest + +from pandas._libs.tslibs.timezones import dateutil_gettz as gettz +from pandas.compat import ( + IS64, + is_platform_windows, +) +from pandas.compat.numpy import np_version_gt2 +import pandas.util._test_decorators as td + +import pandas as pd +from pandas import ( + Categorical, + CategoricalIndex, + DataFrame, + Index, + MultiIndex, + Series, + date_range, + isna, +) +import pandas._testing as tm +from pandas.api.types import CategoricalDtype + + +class TestReindexSetIndex: + # Tests that check both reindex and set_index + + def test_dti_set_index_reindex_datetimeindex(self): + # GH#6631 + df = DataFrame(np.random.default_rng(2).random(6)) + idx1 = date_range("2011/01/01", periods=6, freq="ME", tz="US/Eastern") + idx2 = date_range("2013", periods=6, freq="YE", tz="Asia/Tokyo") + + df = df.set_index(idx1) + tm.assert_index_equal(df.index, idx1) + df = df.reindex(idx2) + tm.assert_index_equal(df.index, idx2) + + def test_dti_set_index_reindex_freq_with_tz(self): + # GH#11314 with tz + index = date_range( + datetime(2015, 10, 1), datetime(2015, 10, 1, 23), freq="h", tz="US/Eastern" + ) + df = DataFrame( + np.random.default_rng(2).standard_normal((24, 1)), + columns=["a"], + index=index, + ) + new_index = date_range( + datetime(2015, 10, 2), datetime(2015, 10, 2, 23), freq="h", tz="US/Eastern" + ) + + result = df.set_index(new_index) + assert result.index.freq == index.freq + + def test_set_reset_index_intervalindex(self): + df = DataFrame({"A": range(10)}) + ser = pd.cut(df.A, 5) + df["B"] = ser + df = df.set_index("B") + + df = df.reset_index() + + def test_setitem_reset_index_dtypes(self): + # GH 22060 + df = DataFrame(columns=["a", "b", "c"]).astype( + {"a": "datetime64[ns]", "b": np.int64, "c": np.float64} + ) + df1 = df.set_index(["a"]) + df1["d"] = [] + result = df1.reset_index() + expected = DataFrame(columns=["a", "b", "c", "d"], index=range(0)).astype( + {"a": "datetime64[ns]", "b": np.int64, "c": np.float64, "d": np.float64} + ) + tm.assert_frame_equal(result, expected) + + df2 = df.set_index(["a", "b"]) + df2["d"] = [] + result = df2.reset_index() + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "timezone, year, month, day, hour", + [["America/Chicago", 2013, 11, 3, 1], ["America/Santiago", 2021, 4, 3, 23]], + ) + def test_reindex_timestamp_with_fold(self, timezone, year, month, day, hour): + # see gh-40817 + test_timezone = gettz(timezone) + transition_1 = pd.Timestamp( + year=year, + month=month, + day=day, + hour=hour, + minute=0, + fold=0, + tzinfo=test_timezone, + ) + transition_2 = pd.Timestamp( + year=year, + month=month, + day=day, + hour=hour, + minute=0, + fold=1, + tzinfo=test_timezone, + ) + df = ( + DataFrame({"index": [transition_1, transition_2], "vals": ["a", "b"]}) + .set_index("index") + .reindex(["1", "2"]) + ) + exp = DataFrame({"index": ["1", "2"], "vals": [np.nan, np.nan]}).set_index( + "index" + ) + exp = exp.astype(df.vals.dtype) + tm.assert_frame_equal( + df, + exp, + ) + + +class TestDataFrameSelectReindex: + # These are specific reindex-based tests; other indexing tests should go in + # test_indexing + + @pytest.mark.xfail( + not IS64 or (is_platform_windows() and not np_version_gt2), + reason="Passes int32 values to DatetimeArray in make_na_array on " + "windows, 32bit linux builds", + ) + @td.skip_array_manager_not_yet_implemented + def test_reindex_tzaware_fill_value(self): + # GH#52586 + df = DataFrame([[1]]) + + ts = pd.Timestamp("2023-04-10 17:32", tz="US/Pacific") + res = df.reindex([0, 1], axis=1, fill_value=ts) + assert res.dtypes[1] == pd.DatetimeTZDtype(unit="s", tz="US/Pacific") + expected = DataFrame({0: [1], 1: [ts]}) + expected[1] = expected[1].astype(res.dtypes[1]) + tm.assert_frame_equal(res, expected) + + per = ts.tz_localize(None).to_period("s") + res = df.reindex([0, 1], axis=1, fill_value=per) + assert res.dtypes[1] == pd.PeriodDtype("s") + expected = DataFrame({0: [1], 1: [per]}) + tm.assert_frame_equal(res, expected) + + interval = pd.Interval(ts, ts + pd.Timedelta(seconds=1)) + res = df.reindex([0, 1], axis=1, fill_value=interval) + assert res.dtypes[1] == pd.IntervalDtype("datetime64[s, US/Pacific]", "right") + expected = DataFrame({0: [1], 1: [interval]}) + expected[1] = expected[1].astype(res.dtypes[1]) + tm.assert_frame_equal(res, expected) + + def test_reindex_copies(self): + # based on asv time_reindex_axis1 + N = 10 + df = DataFrame(np.random.default_rng(2).standard_normal((N * 10, N))) + cols = np.arange(N) + np.random.default_rng(2).shuffle(cols) + + result = df.reindex(columns=cols, copy=True) + assert not np.shares_memory(result[0]._values, df[0]._values) + + # pass both columns and index + result2 = df.reindex(columns=cols, index=df.index, copy=True) + assert not np.shares_memory(result2[0]._values, df[0]._values) + + def test_reindex_copies_ea(self, using_copy_on_write): + # https://github.com/pandas-dev/pandas/pull/51197 + # also ensure to honor copy keyword for ExtensionDtypes + N = 10 + df = DataFrame( + np.random.default_rng(2).standard_normal((N * 10, N)), dtype="Float64" + ) + cols = np.arange(N) + np.random.default_rng(2).shuffle(cols) + + result = df.reindex(columns=cols, copy=True) + if using_copy_on_write: + assert np.shares_memory(result[0].array._data, df[0].array._data) + else: + assert not np.shares_memory(result[0].array._data, df[0].array._data) + + # pass both columns and index + result2 = df.reindex(columns=cols, index=df.index, copy=True) + if using_copy_on_write: + assert np.shares_memory(result2[0].array._data, df[0].array._data) + else: + assert not np.shares_memory(result2[0].array._data, df[0].array._data) + + @td.skip_array_manager_not_yet_implemented + def test_reindex_date_fill_value(self): + # passing date to dt64 is deprecated; enforced in 2.0 to cast to object + arr = date_range("2016-01-01", periods=6).values.reshape(3, 2) + df = DataFrame(arr, columns=["A", "B"], index=range(3)) + + ts = df.iloc[0, 0] + fv = ts.date() + + res = df.reindex(index=range(4), columns=["A", "B", "C"], fill_value=fv) + + expected = DataFrame( + {"A": df["A"].tolist() + [fv], "B": df["B"].tolist() + [fv], "C": [fv] * 4}, + dtype=object, + ) + tm.assert_frame_equal(res, expected) + + # only reindexing rows + res = df.reindex(index=range(4), fill_value=fv) + tm.assert_frame_equal(res, expected[["A", "B"]]) + + # same with a datetime-castable str + res = df.reindex( + index=range(4), columns=["A", "B", "C"], fill_value="2016-01-01" + ) + expected = DataFrame( + {"A": df["A"].tolist() + [ts], "B": df["B"].tolist() + [ts], "C": [ts] * 4}, + ) + tm.assert_frame_equal(res, expected) + + def test_reindex_with_multi_index(self): + # https://github.com/pandas-dev/pandas/issues/29896 + # tests for reindexing a multi-indexed DataFrame with a new MultiIndex + # + # confirms that we can reindex a multi-indexed DataFrame with a new + # MultiIndex object correctly when using no filling, backfilling, and + # padding + # + # The DataFrame, `df`, used in this test is: + # c + # a b + # -1 0 A + # 1 B + # 2 C + # 3 D + # 4 E + # 5 F + # 6 G + # 0 0 A + # 1 B + # 2 C + # 3 D + # 4 E + # 5 F + # 6 G + # 1 0 A + # 1 B + # 2 C + # 3 D + # 4 E + # 5 F + # 6 G + # + # and the other MultiIndex, `new_multi_index`, is: + # 0: 0 0.5 + # 1: 2.0 + # 2: 5.0 + # 3: 5.8 + df = DataFrame( + { + "a": [-1] * 7 + [0] * 7 + [1] * 7, + "b": list(range(7)) * 3, + "c": ["A", "B", "C", "D", "E", "F", "G"] * 3, + } + ).set_index(["a", "b"]) + new_index = [0.5, 2.0, 5.0, 5.8] + new_multi_index = MultiIndex.from_product([[0], new_index], names=["a", "b"]) + + # reindexing w/o a `method` value + reindexed = df.reindex(new_multi_index) + expected = DataFrame( + {"a": [0] * 4, "b": new_index, "c": [np.nan, "C", "F", np.nan]} + ).set_index(["a", "b"]) + tm.assert_frame_equal(expected, reindexed) + + # reindexing with backfilling + expected = DataFrame( + {"a": [0] * 4, "b": new_index, "c": ["B", "C", "F", "G"]} + ).set_index(["a", "b"]) + reindexed_with_backfilling = df.reindex(new_multi_index, method="bfill") + tm.assert_frame_equal(expected, reindexed_with_backfilling) + + reindexed_with_backfilling = df.reindex(new_multi_index, method="backfill") + tm.assert_frame_equal(expected, reindexed_with_backfilling) + + # reindexing with padding + expected = DataFrame( + {"a": [0] * 4, "b": new_index, "c": ["A", "C", "F", "F"]} + ).set_index(["a", "b"]) + reindexed_with_padding = df.reindex(new_multi_index, method="pad") + tm.assert_frame_equal(expected, reindexed_with_padding) + + reindexed_with_padding = df.reindex(new_multi_index, method="ffill") + tm.assert_frame_equal(expected, reindexed_with_padding) + + @pytest.mark.parametrize( + "method,expected_values", + [ + ("nearest", [0, 1, 1, 2]), + ("pad", [np.nan, 0, 1, 1]), + ("backfill", [0, 1, 2, 2]), + ], + ) + def test_reindex_methods(self, method, expected_values): + df = DataFrame({"x": list(range(5))}) + target = np.array([-0.1, 0.9, 1.1, 1.5]) + + expected = DataFrame({"x": expected_values}, index=target) + actual = df.reindex(target, method=method) + tm.assert_frame_equal(expected, actual) + + actual = df.reindex(target, method=method, tolerance=1) + tm.assert_frame_equal(expected, actual) + actual = df.reindex(target, method=method, tolerance=[1, 1, 1, 1]) + tm.assert_frame_equal(expected, actual) + + e2 = expected[::-1] + actual = df.reindex(target[::-1], method=method) + tm.assert_frame_equal(e2, actual) + + new_order = [3, 0, 2, 1] + e2 = expected.iloc[new_order] + actual = df.reindex(target[new_order], method=method) + tm.assert_frame_equal(e2, actual) + + switched_method = ( + "pad" if method == "backfill" else "backfill" if method == "pad" else method + ) + actual = df[::-1].reindex(target, method=switched_method) + tm.assert_frame_equal(expected, actual) + + def test_reindex_methods_nearest_special(self): + df = DataFrame({"x": list(range(5))}) + target = np.array([-0.1, 0.9, 1.1, 1.5]) + + expected = DataFrame({"x": [0, 1, 1, np.nan]}, index=target) + actual = df.reindex(target, method="nearest", tolerance=0.2) + tm.assert_frame_equal(expected, actual) + + expected = DataFrame({"x": [0, np.nan, 1, np.nan]}, index=target) + actual = df.reindex(target, method="nearest", tolerance=[0.5, 0.01, 0.4, 0.1]) + tm.assert_frame_equal(expected, actual) + + def test_reindex_nearest_tz(self, tz_aware_fixture): + # GH26683 + tz = tz_aware_fixture + idx = date_range("2019-01-01", periods=5, tz=tz) + df = DataFrame({"x": list(range(5))}, index=idx) + + expected = df.head(3) + actual = df.reindex(idx[:3], method="nearest") + tm.assert_frame_equal(expected, actual) + + def test_reindex_nearest_tz_empty_frame(self): + # https://github.com/pandas-dev/pandas/issues/31964 + dti = pd.DatetimeIndex(["2016-06-26 14:27:26+00:00"]) + df = DataFrame(index=pd.DatetimeIndex(["2016-07-04 14:00:59+00:00"])) + expected = DataFrame(index=dti) + result = df.reindex(dti, method="nearest") + tm.assert_frame_equal(result, expected) + + def test_reindex_frame_add_nat(self): + rng = date_range("1/1/2000 00:00:00", periods=10, freq="10s") + df = DataFrame( + {"A": np.random.default_rng(2).standard_normal(len(rng)), "B": rng} + ) + + result = df.reindex(range(15)) + assert np.issubdtype(result["B"].dtype, np.dtype("M8[ns]")) + + mask = isna(result)["B"] + assert mask[-5:].all() + assert not mask[:-5].any() + + @pytest.mark.parametrize( + "method, exp_values", + [("ffill", [0, 1, 2, 3]), ("bfill", [1.0, 2.0, 3.0, np.nan])], + ) + def test_reindex_frame_tz_ffill_bfill(self, frame_or_series, method, exp_values): + # GH#38566 + obj = frame_or_series( + [0, 1, 2, 3], + index=date_range("2020-01-01 00:00:00", periods=4, freq="h", tz="UTC"), + ) + new_index = date_range("2020-01-01 00:01:00", periods=4, freq="h", tz="UTC") + result = obj.reindex(new_index, method=method, tolerance=pd.Timedelta("1 hour")) + expected = frame_or_series(exp_values, index=new_index) + tm.assert_equal(result, expected) + + def test_reindex_limit(self): + # GH 28631 + data = [["A", "A", "A"], ["B", "B", "B"], ["C", "C", "C"], ["D", "D", "D"]] + exp_data = [ + ["A", "A", "A"], + ["B", "B", "B"], + ["C", "C", "C"], + ["D", "D", "D"], + ["D", "D", "D"], + [np.nan, np.nan, np.nan], + ] + df = DataFrame(data) + result = df.reindex([0, 1, 2, 3, 4, 5], method="ffill", limit=1) + expected = DataFrame(exp_data) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "idx, check_index_type", + [ + [["C", "B", "A"], True], + [["F", "C", "A", "D"], True], + [["A"], True], + [["A", "B", "C"], True], + [["C", "A", "B"], True], + [["C", "B"], True], + [["C", "A"], True], + [["A", "B"], True], + [["B", "A", "C"], True], + # reindex by these causes different MultiIndex levels + [["D", "F"], False], + [["A", "C", "B"], False], + ], + ) + def test_reindex_level_verify_first_level(self, idx, check_index_type): + df = DataFrame( + { + "jim": list("B" * 4 + "A" * 2 + "C" * 3), + "joe": list("abcdeabcd")[::-1], + "jolie": [10, 20, 30] * 3, + "joline": np.random.default_rng(2).integers(0, 1000, 9), + } + ) + icol = ["jim", "joe", "jolie"] + + def f(val): + return np.nonzero((df["jim"] == val).to_numpy())[0] + + i = np.concatenate(list(map(f, idx))) + left = df.set_index(icol).reindex(idx, level="jim") + right = df.iloc[i].set_index(icol) + tm.assert_frame_equal(left, right, check_index_type=check_index_type) + + @pytest.mark.parametrize( + "idx", + [ + ("mid",), + ("mid", "btm"), + ("mid", "btm", "top"), + ("mid",), + ("mid", "top"), + ("mid", "top", "btm"), + ("btm",), + ("btm", "mid"), + ("btm", "mid", "top"), + ("btm",), + ("btm", "top"), + ("btm", "top", "mid"), + ("top",), + ("top", "mid"), + ("top", "mid", "btm"), + ("top",), + ("top", "btm"), + ("top", "btm", "mid"), + ], + ) + def test_reindex_level_verify_first_level_repeats(self, idx): + df = DataFrame( + { + "jim": ["mid"] * 5 + ["btm"] * 8 + ["top"] * 7, + "joe": ["3rd"] * 2 + + ["1st"] * 3 + + ["2nd"] * 3 + + ["1st"] * 2 + + ["3rd"] * 3 + + ["1st"] * 2 + + ["3rd"] * 3 + + ["2nd"] * 2, + # this needs to be jointly unique with jim and joe or + # reindexing will fail ~1.5% of the time, this works + # out to needing unique groups of same size as joe + "jolie": np.concatenate( + [ + np.random.default_rng(2).choice(1000, x, replace=False) + for x in [2, 3, 3, 2, 3, 2, 3, 2] + ] + ), + "joline": np.random.default_rng(2).standard_normal(20).round(3) * 10, + } + ) + icol = ["jim", "joe", "jolie"] + + def f(val): + return np.nonzero((df["jim"] == val).to_numpy())[0] + + i = np.concatenate(list(map(f, idx))) + left = df.set_index(icol).reindex(idx, level="jim") + right = df.iloc[i].set_index(icol) + tm.assert_frame_equal(left, right) + + @pytest.mark.parametrize( + "idx, indexer", + [ + [ + ["1st", "2nd", "3rd"], + [2, 3, 4, 0, 1, 8, 9, 5, 6, 7, 10, 11, 12, 13, 14, 18, 19, 15, 16, 17], + ], + [ + ["3rd", "2nd", "1st"], + [0, 1, 2, 3, 4, 10, 11, 12, 5, 6, 7, 8, 9, 15, 16, 17, 18, 19, 13, 14], + ], + [["2nd", "3rd"], [0, 1, 5, 6, 7, 10, 11, 12, 18, 19, 15, 16, 17]], + [["3rd", "1st"], [0, 1, 2, 3, 4, 10, 11, 12, 8, 9, 15, 16, 17, 13, 14]], + ], + ) + def test_reindex_level_verify_repeats(self, idx, indexer): + df = DataFrame( + { + "jim": ["mid"] * 5 + ["btm"] * 8 + ["top"] * 7, + "joe": ["3rd"] * 2 + + ["1st"] * 3 + + ["2nd"] * 3 + + ["1st"] * 2 + + ["3rd"] * 3 + + ["1st"] * 2 + + ["3rd"] * 3 + + ["2nd"] * 2, + # this needs to be jointly unique with jim and joe or + # reindexing will fail ~1.5% of the time, this works + # out to needing unique groups of same size as joe + "jolie": np.concatenate( + [ + np.random.default_rng(2).choice(1000, x, replace=False) + for x in [2, 3, 3, 2, 3, 2, 3, 2] + ] + ), + "joline": np.random.default_rng(2).standard_normal(20).round(3) * 10, + } + ) + icol = ["jim", "joe", "jolie"] + left = df.set_index(icol).reindex(idx, level="joe") + right = df.iloc[indexer].set_index(icol) + tm.assert_frame_equal(left, right) + + @pytest.mark.parametrize( + "idx, indexer, check_index_type", + [ + [list("abcde"), [3, 2, 1, 0, 5, 4, 8, 7, 6], True], + [list("abcd"), [3, 2, 1, 0, 5, 8, 7, 6], True], + [list("abc"), [3, 2, 1, 8, 7, 6], True], + [list("eca"), [1, 3, 4, 6, 8], True], + [list("edc"), [0, 1, 4, 5, 6], True], + [list("eadbc"), [3, 0, 2, 1, 4, 5, 8, 7, 6], True], + [list("edwq"), [0, 4, 5], True], + [list("wq"), [], False], + ], + ) + def test_reindex_level_verify(self, idx, indexer, check_index_type): + df = DataFrame( + { + "jim": list("B" * 4 + "A" * 2 + "C" * 3), + "joe": list("abcdeabcd")[::-1], + "jolie": [10, 20, 30] * 3, + "joline": np.random.default_rng(2).integers(0, 1000, 9), + } + ) + icol = ["jim", "joe", "jolie"] + left = df.set_index(icol).reindex(idx, level="joe") + right = df.iloc[indexer].set_index(icol) + tm.assert_frame_equal(left, right, check_index_type=check_index_type) + + def test_non_monotonic_reindex_methods(self): + dr = date_range("2013-08-01", periods=6, freq="B") + data = np.random.default_rng(2).standard_normal((6, 1)) + df = DataFrame(data, index=dr, columns=list("A")) + df_rev = DataFrame(data, index=dr[[3, 4, 5] + [0, 1, 2]], columns=list("A")) + # index is not monotonic increasing or decreasing + msg = "index must be monotonic increasing or decreasing" + with pytest.raises(ValueError, match=msg): + df_rev.reindex(df.index, method="pad") + with pytest.raises(ValueError, match=msg): + df_rev.reindex(df.index, method="ffill") + with pytest.raises(ValueError, match=msg): + df_rev.reindex(df.index, method="bfill") + with pytest.raises(ValueError, match=msg): + df_rev.reindex(df.index, method="nearest") + + def test_reindex_sparse(self): + # https://github.com/pandas-dev/pandas/issues/35286 + df = DataFrame( + {"A": [0, 1], "B": pd.array([0, 1], dtype=pd.SparseDtype("int64", 0))} + ) + result = df.reindex([0, 2]) + expected = DataFrame( + { + "A": [0.0, np.nan], + "B": pd.array([0.0, np.nan], dtype=pd.SparseDtype("float64", 0.0)), + }, + index=[0, 2], + ) + tm.assert_frame_equal(result, expected) + + def test_reindex(self, float_frame, using_copy_on_write): + datetime_series = Series( + np.arange(30, dtype=np.float64), index=date_range("2020-01-01", periods=30) + ) + + newFrame = float_frame.reindex(datetime_series.index) + + for col in newFrame.columns: + for idx, val in newFrame[col].items(): + if idx in float_frame.index: + if np.isnan(val): + assert np.isnan(float_frame[col][idx]) + else: + assert val == float_frame[col][idx] + else: + assert np.isnan(val) + + for col, series in newFrame.items(): + tm.assert_index_equal(series.index, newFrame.index) + emptyFrame = float_frame.reindex(Index([])) + assert len(emptyFrame.index) == 0 + + # Cython code should be unit-tested directly + nonContigFrame = float_frame.reindex(datetime_series.index[::2]) + + for col in nonContigFrame.columns: + for idx, val in nonContigFrame[col].items(): + if idx in float_frame.index: + if np.isnan(val): + assert np.isnan(float_frame[col][idx]) + else: + assert val == float_frame[col][idx] + else: + assert np.isnan(val) + + for col, series in nonContigFrame.items(): + tm.assert_index_equal(series.index, nonContigFrame.index) + + # corner cases + + # Same index, copies values but not index if copy=False + newFrame = float_frame.reindex(float_frame.index, copy=False) + if using_copy_on_write: + assert newFrame.index.is_(float_frame.index) + else: + assert newFrame.index is float_frame.index + + # length zero + newFrame = float_frame.reindex([]) + assert newFrame.empty + assert len(newFrame.columns) == len(float_frame.columns) + + # length zero with columns reindexed with non-empty index + newFrame = float_frame.reindex([]) + newFrame = newFrame.reindex(float_frame.index) + assert len(newFrame.index) == len(float_frame.index) + assert len(newFrame.columns) == len(float_frame.columns) + + # pass non-Index + newFrame = float_frame.reindex(list(datetime_series.index)) + expected = datetime_series.index._with_freq(None) + tm.assert_index_equal(newFrame.index, expected) + + # copy with no axes + result = float_frame.reindex() + tm.assert_frame_equal(result, float_frame) + assert result is not float_frame + + def test_reindex_nan(self): + df = DataFrame( + [[1, 2], [3, 5], [7, 11], [9, 23]], + index=[2, np.nan, 1, 5], + columns=["joe", "jim"], + ) + + i, j = [np.nan, 5, 5, np.nan, 1, 2, np.nan], [1, 3, 3, 1, 2, 0, 1] + tm.assert_frame_equal(df.reindex(i), df.iloc[j]) + + df.index = df.index.astype("object") + tm.assert_frame_equal(df.reindex(i), df.iloc[j], check_index_type=False) + + # GH10388 + df = DataFrame( + { + "other": ["a", "b", np.nan, "c"], + "date": ["2015-03-22", np.nan, "2012-01-08", np.nan], + "amount": [2, 3, 4, 5], + } + ) + + df["date"] = pd.to_datetime(df.date) + df["delta"] = (pd.to_datetime("2015-06-18") - df["date"]).shift(1) + + left = df.set_index(["delta", "other", "date"]).reset_index() + right = df.reindex(columns=["delta", "other", "date", "amount"]) + tm.assert_frame_equal(left, right) + + def test_reindex_name_remains(self): + s = Series(np.random.default_rng(2).random(10)) + df = DataFrame(s, index=np.arange(len(s))) + i = Series(np.arange(10), name="iname") + + df = df.reindex(i) + assert df.index.name == "iname" + + df = df.reindex(Index(np.arange(10), name="tmpname")) + assert df.index.name == "tmpname" + + s = Series(np.random.default_rng(2).random(10)) + df = DataFrame(s.T, index=np.arange(len(s))) + i = Series(np.arange(10), name="iname") + df = df.reindex(columns=i) + assert df.columns.name == "iname" + + def test_reindex_int(self, int_frame): + smaller = int_frame.reindex(int_frame.index[::2]) + + assert smaller["A"].dtype == np.int64 + + bigger = smaller.reindex(int_frame.index) + assert bigger["A"].dtype == np.float64 + + smaller = int_frame.reindex(columns=["A", "B"]) + assert smaller["A"].dtype == np.int64 + + def test_reindex_columns(self, float_frame): + new_frame = float_frame.reindex(columns=["A", "B", "E"]) + + tm.assert_series_equal(new_frame["B"], float_frame["B"]) + assert np.isnan(new_frame["E"]).all() + assert "C" not in new_frame + + # Length zero + new_frame = float_frame.reindex(columns=[]) + assert new_frame.empty + + def test_reindex_columns_method(self): + # GH 14992, reindexing over columns ignored method + df = DataFrame( + data=[[11, 12, 13], [21, 22, 23], [31, 32, 33]], + index=[1, 2, 4], + columns=[1, 2, 4], + dtype=float, + ) + + # default method + result = df.reindex(columns=range(6)) + expected = DataFrame( + data=[ + [np.nan, 11, 12, np.nan, 13, np.nan], + [np.nan, 21, 22, np.nan, 23, np.nan], + [np.nan, 31, 32, np.nan, 33, np.nan], + ], + index=[1, 2, 4], + columns=range(6), + dtype=float, + ) + tm.assert_frame_equal(result, expected) + + # method='ffill' + result = df.reindex(columns=range(6), method="ffill") + expected = DataFrame( + data=[ + [np.nan, 11, 12, 12, 13, 13], + [np.nan, 21, 22, 22, 23, 23], + [np.nan, 31, 32, 32, 33, 33], + ], + index=[1, 2, 4], + columns=range(6), + dtype=float, + ) + tm.assert_frame_equal(result, expected) + + # method='bfill' + result = df.reindex(columns=range(6), method="bfill") + expected = DataFrame( + data=[ + [11, 11, 12, 13, 13, np.nan], + [21, 21, 22, 23, 23, np.nan], + [31, 31, 32, 33, 33, np.nan], + ], + index=[1, 2, 4], + columns=range(6), + dtype=float, + ) + tm.assert_frame_equal(result, expected) + + def test_reindex_axes(self): + # GH 3317, reindexing by both axes loses freq of the index + df = DataFrame( + np.ones((3, 3)), + index=[datetime(2012, 1, 1), datetime(2012, 1, 2), datetime(2012, 1, 3)], + columns=["a", "b", "c"], + ) + time_freq = date_range("2012-01-01", "2012-01-03", freq="d") + some_cols = ["a", "b"] + + index_freq = df.reindex(index=time_freq).index.freq + both_freq = df.reindex(index=time_freq, columns=some_cols).index.freq + seq_freq = df.reindex(index=time_freq).reindex(columns=some_cols).index.freq + assert index_freq == both_freq + assert index_freq == seq_freq + + def test_reindex_fill_value(self): + df = DataFrame(np.random.default_rng(2).standard_normal((10, 4))) + + # axis=0 + result = df.reindex(list(range(15))) + assert np.isnan(result.values[-5:]).all() + + result = df.reindex(range(15), fill_value=0) + expected = df.reindex(range(15)).fillna(0) + tm.assert_frame_equal(result, expected) + + # axis=1 + result = df.reindex(columns=range(5), fill_value=0.0) + expected = df.copy() + expected[4] = 0.0 + tm.assert_frame_equal(result, expected) + + result = df.reindex(columns=range(5), fill_value=0) + expected = df.copy() + expected[4] = 0 + tm.assert_frame_equal(result, expected) + + result = df.reindex(columns=range(5), fill_value="foo") + expected = df.copy() + expected[4] = "foo" + tm.assert_frame_equal(result, expected) + + # other dtypes + df["foo"] = "foo" + result = df.reindex(range(15), fill_value="0") + expected = df.reindex(range(15)).fillna("0") + tm.assert_frame_equal(result, expected) + + def test_reindex_uint_dtypes_fill_value(self, any_unsigned_int_numpy_dtype): + # GH#48184 + df = DataFrame({"a": [1, 2], "b": [1, 2]}, dtype=any_unsigned_int_numpy_dtype) + result = df.reindex(columns=list("abcd"), index=[0, 1, 2, 3], fill_value=10) + expected = DataFrame( + {"a": [1, 2, 10, 10], "b": [1, 2, 10, 10], "c": 10, "d": 10}, + dtype=any_unsigned_int_numpy_dtype, + ) + tm.assert_frame_equal(result, expected) + + def test_reindex_single_column_ea_index_and_columns(self, any_numeric_ea_dtype): + # GH#48190 + df = DataFrame({"a": [1, 2]}, dtype=any_numeric_ea_dtype) + result = df.reindex(columns=list("ab"), index=[0, 1, 2], fill_value=10) + expected = DataFrame( + {"a": Series([1, 2, 10], dtype=any_numeric_ea_dtype), "b": 10} + ) + tm.assert_frame_equal(result, expected) + + def test_reindex_dups(self): + # GH4746, reindex on duplicate index error messages + arr = np.random.default_rng(2).standard_normal(10) + df = DataFrame(arr, index=[1, 2, 3, 4, 5, 1, 2, 3, 4, 5]) + + # set index is ok + result = df.copy() + result.index = list(range(len(df))) + expected = DataFrame(arr, index=list(range(len(df)))) + tm.assert_frame_equal(result, expected) + + # reindex fails + msg = "cannot reindex on an axis with duplicate labels" + with pytest.raises(ValueError, match=msg): + df.reindex(index=list(range(len(df)))) + + def test_reindex_with_duplicate_columns(self): + # reindex is invalid! + df = DataFrame( + [[1, 5, 7.0], [1, 5, 7.0], [1, 5, 7.0]], columns=["bar", "a", "a"] + ) + msg = "cannot reindex on an axis with duplicate labels" + with pytest.raises(ValueError, match=msg): + df.reindex(columns=["bar"]) + with pytest.raises(ValueError, match=msg): + df.reindex(columns=["bar", "foo"]) + + def test_reindex_axis_style(self): + # https://github.com/pandas-dev/pandas/issues/12392 + df = DataFrame({"A": [1, 2, 3], "B": [4, 5, 6]}) + expected = DataFrame( + {"A": [1, 2, np.nan], "B": [4, 5, np.nan]}, index=[0, 1, 3] + ) + result = df.reindex([0, 1, 3]) + tm.assert_frame_equal(result, expected) + + result = df.reindex([0, 1, 3], axis=0) + tm.assert_frame_equal(result, expected) + + result = df.reindex([0, 1, 3], axis="index") + tm.assert_frame_equal(result, expected) + + def test_reindex_positional_raises(self): + # https://github.com/pandas-dev/pandas/issues/12392 + # Enforced in 2.0 + df = DataFrame({"A": [1, 2, 3], "B": [4, 5, 6]}) + msg = r"reindex\(\) takes from 1 to 2 positional arguments but 3 were given" + with pytest.raises(TypeError, match=msg): + df.reindex([0, 1], ["A", "B", "C"]) + + def test_reindex_axis_style_raises(self): + # https://github.com/pandas-dev/pandas/issues/12392 + df = DataFrame({"A": [1, 2, 3], "B": [4, 5, 6]}) + with pytest.raises(TypeError, match="Cannot specify both 'axis'"): + df.reindex([0, 1], columns=["A"], axis=1) + + with pytest.raises(TypeError, match="Cannot specify both 'axis'"): + df.reindex([0, 1], columns=["A"], axis="index") + + with pytest.raises(TypeError, match="Cannot specify both 'axis'"): + df.reindex(index=[0, 1], axis="index") + + with pytest.raises(TypeError, match="Cannot specify both 'axis'"): + df.reindex(index=[0, 1], axis="columns") + + with pytest.raises(TypeError, match="Cannot specify both 'axis'"): + df.reindex(columns=[0, 1], axis="columns") + + with pytest.raises(TypeError, match="Cannot specify both 'axis'"): + df.reindex(index=[0, 1], columns=[0, 1], axis="columns") + + with pytest.raises(TypeError, match="Cannot specify all"): + df.reindex(labels=[0, 1], index=[0], columns=["A"]) + + # Mixing styles + with pytest.raises(TypeError, match="Cannot specify both 'axis'"): + df.reindex(index=[0, 1], axis="index") + + with pytest.raises(TypeError, match="Cannot specify both 'axis'"): + df.reindex(index=[0, 1], axis="columns") + + # Duplicates + with pytest.raises(TypeError, match="multiple values"): + df.reindex([0, 1], labels=[0, 1]) + + def test_reindex_single_named_indexer(self): + # https://github.com/pandas-dev/pandas/issues/12392 + df = DataFrame({"A": [1, 2, 3], "B": [1, 2, 3]}) + result = df.reindex([0, 1], columns=["A"]) + expected = DataFrame({"A": [1, 2]}) + tm.assert_frame_equal(result, expected) + + def test_reindex_api_equivalence(self): + # https://github.com/pandas-dev/pandas/issues/12392 + # equivalence of the labels/axis and index/columns API's + df = DataFrame( + [[1, 2, 3], [3, 4, 5], [5, 6, 7]], + index=["a", "b", "c"], + columns=["d", "e", "f"], + ) + + res1 = df.reindex(["b", "a"]) + res2 = df.reindex(index=["b", "a"]) + res3 = df.reindex(labels=["b", "a"]) + res4 = df.reindex(labels=["b", "a"], axis=0) + res5 = df.reindex(["b", "a"], axis=0) + for res in [res2, res3, res4, res5]: + tm.assert_frame_equal(res1, res) + + res1 = df.reindex(columns=["e", "d"]) + res2 = df.reindex(["e", "d"], axis=1) + res3 = df.reindex(labels=["e", "d"], axis=1) + for res in [res2, res3]: + tm.assert_frame_equal(res1, res) + + res1 = df.reindex(index=["b", "a"], columns=["e", "d"]) + res2 = df.reindex(columns=["e", "d"], index=["b", "a"]) + res3 = df.reindex(labels=["b", "a"], axis=0).reindex(labels=["e", "d"], axis=1) + for res in [res2, res3]: + tm.assert_frame_equal(res1, res) + + def test_reindex_boolean(self): + frame = DataFrame( + np.ones((10, 2), dtype=bool), index=np.arange(0, 20, 2), columns=[0, 2] + ) + + reindexed = frame.reindex(np.arange(10)) + assert reindexed.values.dtype == np.object_ + assert isna(reindexed[0][1]) + + reindexed = frame.reindex(columns=range(3)) + assert reindexed.values.dtype == np.object_ + assert isna(reindexed[1]).all() + + def test_reindex_objects(self, float_string_frame): + reindexed = float_string_frame.reindex(columns=["foo", "A", "B"]) + assert "foo" in reindexed + + reindexed = float_string_frame.reindex(columns=["A", "B"]) + assert "foo" not in reindexed + + def test_reindex_corner(self, int_frame): + index = Index(["a", "b", "c"]) + dm = DataFrame({}).reindex(index=[1, 2, 3]) + reindexed = dm.reindex(columns=index) + tm.assert_index_equal(reindexed.columns, index) + + # ints are weird + smaller = int_frame.reindex(columns=["A", "B", "E"]) + assert smaller["E"].dtype == np.float64 + + def test_reindex_with_nans(self): + df = DataFrame( + [[1, 2], [3, 4], [np.nan, np.nan], [7, 8], [9, 10]], + columns=["a", "b"], + index=[100.0, 101.0, np.nan, 102.0, 103.0], + ) + + result = df.reindex(index=[101.0, 102.0, 103.0]) + expected = df.iloc[[1, 3, 4]] + tm.assert_frame_equal(result, expected) + + result = df.reindex(index=[103.0]) + expected = df.iloc[[4]] + tm.assert_frame_equal(result, expected) + + result = df.reindex(index=[101.0]) + expected = df.iloc[[1]] + tm.assert_frame_equal(result, expected) + + def test_reindex_multi(self): + df = DataFrame(np.random.default_rng(2).standard_normal((3, 3))) + + result = df.reindex(index=range(4), columns=range(4)) + expected = df.reindex(list(range(4))).reindex(columns=range(4)) + + tm.assert_frame_equal(result, expected) + + df = DataFrame(np.random.default_rng(2).integers(0, 10, (3, 3))) + + result = df.reindex(index=range(4), columns=range(4)) + expected = df.reindex(list(range(4))).reindex(columns=range(4)) + + tm.assert_frame_equal(result, expected) + + df = DataFrame(np.random.default_rng(2).integers(0, 10, (3, 3))) + + result = df.reindex(index=range(2), columns=range(2)) + expected = df.reindex(range(2)).reindex(columns=range(2)) + + tm.assert_frame_equal(result, expected) + + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 3)) + 1j, + columns=["a", "b", "c"], + ) + + result = df.reindex(index=[0, 1], columns=["a", "b"]) + expected = df.reindex([0, 1]).reindex(columns=["a", "b"]) + + tm.assert_frame_equal(result, expected) + + def test_reindex_multi_categorical_time(self): + # https://github.com/pandas-dev/pandas/issues/21390 + midx = MultiIndex.from_product( + [ + Categorical(["a", "b", "c"]), + Categorical(date_range("2012-01-01", periods=3, freq="h")), + ] + ) + df = DataFrame({"a": range(len(midx))}, index=midx) + df2 = df.iloc[[0, 1, 2, 3, 4, 5, 6, 8]] + + result = df2.reindex(midx) + expected = DataFrame({"a": [0, 1, 2, 3, 4, 5, 6, np.nan, 8]}, index=midx) + tm.assert_frame_equal(result, expected) + + def test_reindex_with_categoricalindex(self): + df = DataFrame( + { + "A": np.arange(3, dtype="int64"), + }, + index=CategoricalIndex( + list("abc"), dtype=CategoricalDtype(list("cabe")), name="B" + ), + ) + + # reindexing + # convert to a regular index + result = df.reindex(["a", "b", "e"]) + expected = DataFrame({"A": [0, 1, np.nan], "B": Series(list("abe"))}).set_index( + "B" + ) + tm.assert_frame_equal(result, expected, check_index_type=True) + + result = df.reindex(["a", "b"]) + expected = DataFrame({"A": [0, 1], "B": Series(list("ab"))}).set_index("B") + tm.assert_frame_equal(result, expected, check_index_type=True) + + result = df.reindex(["e"]) + expected = DataFrame({"A": [np.nan], "B": Series(["e"])}).set_index("B") + tm.assert_frame_equal(result, expected, check_index_type=True) + + result = df.reindex(["d"]) + expected = DataFrame({"A": [np.nan], "B": Series(["d"])}).set_index("B") + tm.assert_frame_equal(result, expected, check_index_type=True) + + # since we are actually reindexing with a Categorical + # then return a Categorical + cats = list("cabe") + + result = df.reindex(Categorical(["a", "e"], categories=cats)) + expected = DataFrame( + {"A": [0, np.nan], "B": Series(list("ae")).astype(CategoricalDtype(cats))} + ).set_index("B") + tm.assert_frame_equal(result, expected, check_index_type=True) + + result = df.reindex(Categorical(["a"], categories=cats)) + expected = DataFrame( + {"A": [0], "B": Series(list("a")).astype(CategoricalDtype(cats))} + ).set_index("B") + tm.assert_frame_equal(result, expected, check_index_type=True) + + result = df.reindex(["a", "b", "e"]) + expected = DataFrame({"A": [0, 1, np.nan], "B": Series(list("abe"))}).set_index( + "B" + ) + tm.assert_frame_equal(result, expected, check_index_type=True) + + result = df.reindex(["a", "b"]) + expected = DataFrame({"A": [0, 1], "B": Series(list("ab"))}).set_index("B") + tm.assert_frame_equal(result, expected, check_index_type=True) + + result = df.reindex(["e"]) + expected = DataFrame({"A": [np.nan], "B": Series(["e"])}).set_index("B") + tm.assert_frame_equal(result, expected, check_index_type=True) + + # give back the type of categorical that we received + result = df.reindex(Categorical(["a", "e"], categories=cats, ordered=True)) + expected = DataFrame( + { + "A": [0, np.nan], + "B": Series(list("ae")).astype(CategoricalDtype(cats, ordered=True)), + } + ).set_index("B") + tm.assert_frame_equal(result, expected, check_index_type=True) + + result = df.reindex(Categorical(["a", "d"], categories=["a", "d"])) + expected = DataFrame( + { + "A": [0, np.nan], + "B": Series(list("ad")).astype(CategoricalDtype(["a", "d"])), + } + ).set_index("B") + tm.assert_frame_equal(result, expected, check_index_type=True) + + df2 = DataFrame( + { + "A": np.arange(6, dtype="int64"), + }, + index=CategoricalIndex( + list("aabbca"), dtype=CategoricalDtype(list("cabe")), name="B" + ), + ) + # passed duplicate indexers are not allowed + msg = "cannot reindex on an axis with duplicate labels" + with pytest.raises(ValueError, match=msg): + df2.reindex(["a", "b"]) + + # args NotImplemented ATM + msg = r"argument {} is not implemented for CategoricalIndex\.reindex" + with pytest.raises(NotImplementedError, match=msg.format("method")): + df.reindex(["a"], method="ffill") + with pytest.raises(NotImplementedError, match=msg.format("level")): + df.reindex(["a"], level=1) + with pytest.raises(NotImplementedError, match=msg.format("limit")): + df.reindex(["a"], limit=2) + + def test_reindex_signature(self): + sig = inspect.signature(DataFrame.reindex) + parameters = set(sig.parameters) + assert parameters == { + "self", + "labels", + "index", + "columns", + "axis", + "limit", + "copy", + "level", + "method", + "fill_value", + "tolerance", + } + + def test_reindex_multiindex_ffill_added_rows(self): + # GH#23693 + # reindex added rows with nan values even when fill method was specified + mi = MultiIndex.from_tuples([("a", "b"), ("d", "e")]) + df = DataFrame([[0, 7], [3, 4]], index=mi, columns=["x", "y"]) + mi2 = MultiIndex.from_tuples([("a", "b"), ("d", "e"), ("h", "i")]) + result = df.reindex(mi2, axis=0, method="ffill") + expected = DataFrame([[0, 7], [3, 4], [3, 4]], index=mi2, columns=["x", "y"]) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "kwargs", + [ + {"method": "pad", "tolerance": timedelta(seconds=9)}, + {"method": "backfill", "tolerance": timedelta(seconds=9)}, + {"method": "nearest"}, + {"method": None}, + ], + ) + def test_reindex_empty_frame(self, kwargs): + # GH#27315 + idx = date_range(start="2020", freq="30s", periods=3) + df = DataFrame([], index=Index([], name="time"), columns=["a"]) + result = df.reindex(idx, **kwargs) + expected = DataFrame({"a": [np.nan] * 3}, index=idx, dtype=object) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "src_idx", + [ + Index([]), + CategoricalIndex([]), + ], + ) + @pytest.mark.parametrize( + "cat_idx", + [ + # No duplicates + Index([]), + CategoricalIndex([]), + Index(["A", "B"]), + CategoricalIndex(["A", "B"]), + # Duplicates: GH#38906 + Index(["A", "A"]), + CategoricalIndex(["A", "A"]), + ], + ) + def test_reindex_empty(self, src_idx, cat_idx): + df = DataFrame(columns=src_idx, index=["K"], dtype="f8") + + result = df.reindex(columns=cat_idx) + expected = DataFrame(index=["K"], columns=cat_idx, dtype="f8") + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("dtype", ["m8[ns]", "M8[ns]"]) + def test_reindex_datetimelike_to_object(self, dtype): + # GH#39755 dont cast dt64/td64 to ints + mi = MultiIndex.from_product([list("ABCDE"), range(2)]) + + dti = date_range("2016-01-01", periods=10) + fv = np.timedelta64("NaT", "ns") + if dtype == "m8[ns]": + dti = dti - dti[0] + fv = np.datetime64("NaT", "ns") + + ser = Series(dti, index=mi) + ser[::3] = pd.NaT + + df = ser.unstack() + + index = df.index.append(Index([1])) + columns = df.columns.append(Index(["foo"])) + + res = df.reindex(index=index, columns=columns, fill_value=fv) + + expected = DataFrame( + { + 0: df[0].tolist() + [fv], + 1: df[1].tolist() + [fv], + "foo": np.array(["NaT"] * 6, dtype=fv.dtype), + }, + index=index, + ) + assert (res.dtypes[[0, 1]] == object).all() + assert res.iloc[0, 0] is pd.NaT + assert res.iloc[-1, 0] is fv + assert res.iloc[-1, 1] is fv + tm.assert_frame_equal(res, expected) + + @pytest.mark.parametrize( + "index_df,index_res,index_exp", + [ + ( + CategoricalIndex([], categories=["A"]), + Index(["A"]), + Index(["A"]), + ), + ( + CategoricalIndex([], categories=["A"]), + Index(["B"]), + Index(["B"]), + ), + ( + CategoricalIndex([], categories=["A"]), + CategoricalIndex(["A"]), + CategoricalIndex(["A"]), + ), + ( + CategoricalIndex([], categories=["A"]), + CategoricalIndex(["B"]), + CategoricalIndex(["B"]), + ), + ], + ) + def test_reindex_not_category(self, index_df, index_res, index_exp): + # GH#28690 + df = DataFrame(index=index_df) + result = df.reindex(index=index_res) + expected = DataFrame(index=index_exp) + tm.assert_frame_equal(result, expected) + + def test_invalid_method(self): + df = DataFrame({"A": [1, np.nan, 2]}) + + msg = "Invalid fill method" + with pytest.raises(ValueError, match=msg): + df.reindex([1, 0, 2], method="asfreq") diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_reindex_like.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_reindex_like.py new file mode 100644 index 0000000000000000000000000000000000000000..ce68ec28eec3dd85461fcecfe506524040f64542 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_reindex_like.py @@ -0,0 +1,39 @@ +import numpy as np +import pytest + +from pandas import DataFrame +import pandas._testing as tm + + +class TestDataFrameReindexLike: + def test_reindex_like(self, float_frame): + other = float_frame.reindex(index=float_frame.index[:10], columns=["C", "B"]) + + tm.assert_frame_equal(other, float_frame.reindex_like(other)) + + @pytest.mark.parametrize( + "method,expected_values", + [ + ("nearest", [0, 1, 1, 2]), + ("pad", [np.nan, 0, 1, 1]), + ("backfill", [0, 1, 2, 2]), + ], + ) + def test_reindex_like_methods(self, method, expected_values): + df = DataFrame({"x": list(range(5))}) + + result = df.reindex_like(df, method=method, tolerance=0) + tm.assert_frame_equal(df, result) + result = df.reindex_like(df, method=method, tolerance=[0, 0, 0, 0]) + tm.assert_frame_equal(df, result) + + def test_reindex_like_subclass(self): + # https://github.com/pandas-dev/pandas/issues/31925 + class MyDataFrame(DataFrame): + pass + + expected = DataFrame() + df = MyDataFrame() + result = df.reindex_like(expected) + + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_rename.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_rename.py new file mode 100644 index 0000000000000000000000000000000000000000..c3bc96b44c80745d2b96a4c57f936778372affb8 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_rename.py @@ -0,0 +1,415 @@ +from collections import ChainMap +import inspect + +import numpy as np +import pytest + +from pandas import ( + DataFrame, + Index, + MultiIndex, + merge, +) +import pandas._testing as tm + + +class TestRename: + def test_rename_signature(self): + sig = inspect.signature(DataFrame.rename) + parameters = set(sig.parameters) + assert parameters == { + "self", + "mapper", + "index", + "columns", + "axis", + "inplace", + "copy", + "level", + "errors", + } + + def test_rename_mi(self, frame_or_series): + obj = frame_or_series( + [11, 21, 31], + index=MultiIndex.from_tuples([("A", x) for x in ["a", "B", "c"]]), + ) + obj.rename(str.lower) + + def test_rename(self, float_frame): + mapping = {"A": "a", "B": "b", "C": "c", "D": "d"} + + renamed = float_frame.rename(columns=mapping) + renamed2 = float_frame.rename(columns=str.lower) + + tm.assert_frame_equal(renamed, renamed2) + tm.assert_frame_equal( + renamed2.rename(columns=str.upper), float_frame, check_names=False + ) + + # index + data = {"A": {"foo": 0, "bar": 1}} + + df = DataFrame(data) + renamed = df.rename(index={"foo": "bar", "bar": "foo"}) + tm.assert_index_equal(renamed.index, Index(["bar", "foo"])) + + renamed = df.rename(index=str.upper) + tm.assert_index_equal(renamed.index, Index(["FOO", "BAR"])) + + # have to pass something + with pytest.raises(TypeError, match="must pass an index to rename"): + float_frame.rename() + + # partial columns + renamed = float_frame.rename(columns={"C": "foo", "D": "bar"}) + tm.assert_index_equal(renamed.columns, Index(["A", "B", "foo", "bar"])) + + # other axis + renamed = float_frame.T.rename(index={"C": "foo", "D": "bar"}) + tm.assert_index_equal(renamed.index, Index(["A", "B", "foo", "bar"])) + + # index with name + index = Index(["foo", "bar"], name="name") + renamer = DataFrame(data, index=index) + renamed = renamer.rename(index={"foo": "bar", "bar": "foo"}) + tm.assert_index_equal(renamed.index, Index(["bar", "foo"], name="name")) + assert renamed.index.name == renamer.index.name + + @pytest.mark.parametrize( + "args,kwargs", + [ + ((ChainMap({"A": "a"}, {"B": "b"}),), {"axis": "columns"}), + ((), {"columns": ChainMap({"A": "a"}, {"B": "b"})}), + ], + ) + def test_rename_chainmap(self, args, kwargs): + # see gh-23859 + colAData = range(1, 11) + colBdata = np.random.default_rng(2).standard_normal(10) + + df = DataFrame({"A": colAData, "B": colBdata}) + result = df.rename(*args, **kwargs) + + expected = DataFrame({"a": colAData, "b": colBdata}) + tm.assert_frame_equal(result, expected) + + def test_rename_multiindex(self): + tuples_index = [("foo1", "bar1"), ("foo2", "bar2")] + tuples_columns = [("fizz1", "buzz1"), ("fizz2", "buzz2")] + index = MultiIndex.from_tuples(tuples_index, names=["foo", "bar"]) + columns = MultiIndex.from_tuples(tuples_columns, names=["fizz", "buzz"]) + df = DataFrame([(0, 0), (1, 1)], index=index, columns=columns) + + # + # without specifying level -> across all levels + + renamed = df.rename( + index={"foo1": "foo3", "bar2": "bar3"}, + columns={"fizz1": "fizz3", "buzz2": "buzz3"}, + ) + new_index = MultiIndex.from_tuples( + [("foo3", "bar1"), ("foo2", "bar3")], names=["foo", "bar"] + ) + new_columns = MultiIndex.from_tuples( + [("fizz3", "buzz1"), ("fizz2", "buzz3")], names=["fizz", "buzz"] + ) + tm.assert_index_equal(renamed.index, new_index) + tm.assert_index_equal(renamed.columns, new_columns) + assert renamed.index.names == df.index.names + assert renamed.columns.names == df.columns.names + + # + # with specifying a level (GH13766) + + # dict + new_columns = MultiIndex.from_tuples( + [("fizz3", "buzz1"), ("fizz2", "buzz2")], names=["fizz", "buzz"] + ) + renamed = df.rename(columns={"fizz1": "fizz3", "buzz2": "buzz3"}, level=0) + tm.assert_index_equal(renamed.columns, new_columns) + renamed = df.rename(columns={"fizz1": "fizz3", "buzz2": "buzz3"}, level="fizz") + tm.assert_index_equal(renamed.columns, new_columns) + + new_columns = MultiIndex.from_tuples( + [("fizz1", "buzz1"), ("fizz2", "buzz3")], names=["fizz", "buzz"] + ) + renamed = df.rename(columns={"fizz1": "fizz3", "buzz2": "buzz3"}, level=1) + tm.assert_index_equal(renamed.columns, new_columns) + renamed = df.rename(columns={"fizz1": "fizz3", "buzz2": "buzz3"}, level="buzz") + tm.assert_index_equal(renamed.columns, new_columns) + + # function + func = str.upper + new_columns = MultiIndex.from_tuples( + [("FIZZ1", "buzz1"), ("FIZZ2", "buzz2")], names=["fizz", "buzz"] + ) + renamed = df.rename(columns=func, level=0) + tm.assert_index_equal(renamed.columns, new_columns) + renamed = df.rename(columns=func, level="fizz") + tm.assert_index_equal(renamed.columns, new_columns) + + new_columns = MultiIndex.from_tuples( + [("fizz1", "BUZZ1"), ("fizz2", "BUZZ2")], names=["fizz", "buzz"] + ) + renamed = df.rename(columns=func, level=1) + tm.assert_index_equal(renamed.columns, new_columns) + renamed = df.rename(columns=func, level="buzz") + tm.assert_index_equal(renamed.columns, new_columns) + + # index + new_index = MultiIndex.from_tuples( + [("foo3", "bar1"), ("foo2", "bar2")], names=["foo", "bar"] + ) + renamed = df.rename(index={"foo1": "foo3", "bar2": "bar3"}, level=0) + tm.assert_index_equal(renamed.index, new_index) + + def test_rename_nocopy(self, float_frame, using_copy_on_write, warn_copy_on_write): + renamed = float_frame.rename(columns={"C": "foo"}, copy=False) + + assert np.shares_memory(renamed["foo"]._values, float_frame["C"]._values) + + with tm.assert_cow_warning(warn_copy_on_write): + renamed.loc[:, "foo"] = 1.0 + if using_copy_on_write: + assert not (float_frame["C"] == 1.0).all() + else: + assert (float_frame["C"] == 1.0).all() + + def test_rename_inplace(self, float_frame): + float_frame.rename(columns={"C": "foo"}) + assert "C" in float_frame + assert "foo" not in float_frame + + c_values = float_frame["C"] + float_frame = float_frame.copy() + return_value = float_frame.rename(columns={"C": "foo"}, inplace=True) + assert return_value is None + + assert "C" not in float_frame + assert "foo" in float_frame + # GH 44153 + # Used to be id(float_frame["foo"]) != c_id, but flaky in the CI + assert float_frame["foo"] is not c_values + + def test_rename_bug(self): + # GH 5344 + # rename set ref_locs, and set_index was not resetting + df = DataFrame({0: ["foo", "bar"], 1: ["bah", "bas"], 2: [1, 2]}) + df = df.rename(columns={0: "a"}) + df = df.rename(columns={1: "b"}) + df = df.set_index(["a", "b"]) + df.columns = ["2001-01-01"] + expected = DataFrame( + [[1], [2]], + index=MultiIndex.from_tuples( + [("foo", "bah"), ("bar", "bas")], names=["a", "b"] + ), + columns=["2001-01-01"], + ) + tm.assert_frame_equal(df, expected) + + def test_rename_bug2(self): + # GH 19497 + # rename was changing Index to MultiIndex if Index contained tuples + + df = DataFrame(data=np.arange(3), index=[(0, 0), (1, 1), (2, 2)], columns=["a"]) + df = df.rename({(1, 1): (5, 4)}, axis="index") + expected = DataFrame( + data=np.arange(3), index=[(0, 0), (5, 4), (2, 2)], columns=["a"] + ) + tm.assert_frame_equal(df, expected) + + def test_rename_errors_raises(self): + df = DataFrame(columns=["A", "B", "C", "D"]) + with pytest.raises(KeyError, match="'E'] not found in axis"): + df.rename(columns={"A": "a", "E": "e"}, errors="raise") + + @pytest.mark.parametrize( + "mapper, errors, expected_columns", + [ + ({"A": "a", "E": "e"}, "ignore", ["a", "B", "C", "D"]), + ({"A": "a"}, "raise", ["a", "B", "C", "D"]), + (str.lower, "raise", ["a", "b", "c", "d"]), + ], + ) + def test_rename_errors(self, mapper, errors, expected_columns): + # GH 13473 + # rename now works with errors parameter + df = DataFrame(columns=["A", "B", "C", "D"]) + result = df.rename(columns=mapper, errors=errors) + expected = DataFrame(columns=expected_columns) + tm.assert_frame_equal(result, expected) + + def test_rename_objects(self, float_string_frame): + renamed = float_string_frame.rename(columns=str.upper) + + assert "FOO" in renamed + assert "foo" not in renamed + + def test_rename_axis_style(self): + # https://github.com/pandas-dev/pandas/issues/12392 + df = DataFrame({"A": [1, 2], "B": [1, 2]}, index=["X", "Y"]) + expected = DataFrame({"a": [1, 2], "b": [1, 2]}, index=["X", "Y"]) + + result = df.rename(str.lower, axis=1) + tm.assert_frame_equal(result, expected) + + result = df.rename(str.lower, axis="columns") + tm.assert_frame_equal(result, expected) + + result = df.rename({"A": "a", "B": "b"}, axis=1) + tm.assert_frame_equal(result, expected) + + result = df.rename({"A": "a", "B": "b"}, axis="columns") + tm.assert_frame_equal(result, expected) + + # Index + expected = DataFrame({"A": [1, 2], "B": [1, 2]}, index=["x", "y"]) + result = df.rename(str.lower, axis=0) + tm.assert_frame_equal(result, expected) + + result = df.rename(str.lower, axis="index") + tm.assert_frame_equal(result, expected) + + result = df.rename({"X": "x", "Y": "y"}, axis=0) + tm.assert_frame_equal(result, expected) + + result = df.rename({"X": "x", "Y": "y"}, axis="index") + tm.assert_frame_equal(result, expected) + + result = df.rename(mapper=str.lower, axis="index") + tm.assert_frame_equal(result, expected) + + def test_rename_mapper_multi(self): + df = DataFrame({"A": ["a", "b"], "B": ["c", "d"], "C": [1, 2]}).set_index( + ["A", "B"] + ) + result = df.rename(str.upper) + expected = df.rename(index=str.upper) + tm.assert_frame_equal(result, expected) + + def test_rename_positional_named(self): + # https://github.com/pandas-dev/pandas/issues/12392 + df = DataFrame({"a": [1, 2], "b": [1, 2]}, index=["X", "Y"]) + result = df.rename(index=str.lower, columns=str.upper) + expected = DataFrame({"A": [1, 2], "B": [1, 2]}, index=["x", "y"]) + tm.assert_frame_equal(result, expected) + + def test_rename_axis_style_raises(self): + # see gh-12392 + df = DataFrame({"A": [1, 2], "B": [1, 2]}, index=["0", "1"]) + + # Named target and axis + over_spec_msg = "Cannot specify both 'axis' and any of 'index' or 'columns'" + with pytest.raises(TypeError, match=over_spec_msg): + df.rename(index=str.lower, axis=1) + + with pytest.raises(TypeError, match=over_spec_msg): + df.rename(index=str.lower, axis="columns") + + with pytest.raises(TypeError, match=over_spec_msg): + df.rename(columns=str.lower, axis="columns") + + with pytest.raises(TypeError, match=over_spec_msg): + df.rename(index=str.lower, axis=0) + + # Multiple targets and axis + with pytest.raises(TypeError, match=over_spec_msg): + df.rename(str.lower, index=str.lower, axis="columns") + + # Too many targets + over_spec_msg = "Cannot specify both 'mapper' and any of 'index' or 'columns'" + with pytest.raises(TypeError, match=over_spec_msg): + df.rename(str.lower, index=str.lower, columns=str.lower) + + # Duplicates + with pytest.raises(TypeError, match="multiple values"): + df.rename(id, mapper=id) + + def test_rename_positional_raises(self): + # GH 29136 + df = DataFrame(columns=["A", "B"]) + msg = r"rename\(\) takes from 1 to 2 positional arguments" + + with pytest.raises(TypeError, match=msg): + df.rename(None, str.lower) + + def test_rename_no_mappings_raises(self): + # GH 29136 + df = DataFrame([[1]]) + msg = "must pass an index to rename" + with pytest.raises(TypeError, match=msg): + df.rename() + + with pytest.raises(TypeError, match=msg): + df.rename(None, index=None) + + with pytest.raises(TypeError, match=msg): + df.rename(None, columns=None) + + with pytest.raises(TypeError, match=msg): + df.rename(None, columns=None, index=None) + + def test_rename_mapper_and_positional_arguments_raises(self): + # GH 29136 + df = DataFrame([[1]]) + msg = "Cannot specify both 'mapper' and any of 'index' or 'columns'" + with pytest.raises(TypeError, match=msg): + df.rename({}, index={}) + + with pytest.raises(TypeError, match=msg): + df.rename({}, columns={}) + + with pytest.raises(TypeError, match=msg): + df.rename({}, columns={}, index={}) + + def test_rename_with_duplicate_columns(self): + # GH#4403 + df4 = DataFrame( + {"RT": [0.0454], "TClose": [22.02], "TExg": [0.0422]}, + index=MultiIndex.from_tuples( + [(600809, 20130331)], names=["STK_ID", "RPT_Date"] + ), + ) + + df5 = DataFrame( + { + "RPT_Date": [20120930, 20121231, 20130331], + "STK_ID": [600809] * 3, + "STK_Name": ["饡驦", "饡驦", "饡驦"], + "TClose": [38.05, 41.66, 30.01], + }, + index=MultiIndex.from_tuples( + [(600809, 20120930), (600809, 20121231), (600809, 20130331)], + names=["STK_ID", "RPT_Date"], + ), + ) + # TODO: can we construct this without merge? + k = merge(df4, df5, how="inner", left_index=True, right_index=True) + result = k.rename(columns={"TClose_x": "TClose", "TClose_y": "QT_Close"}) + + expected = DataFrame( + [[0.0454, 22.02, 0.0422, 20130331, 600809, "饡驦", 30.01]], + columns=[ + "RT", + "TClose", + "TExg", + "RPT_Date", + "STK_ID", + "STK_Name", + "QT_Close", + ], + ).set_index(["STK_ID", "RPT_Date"], drop=False) + tm.assert_frame_equal(result, expected) + + def test_rename_boolean_index(self): + df = DataFrame(np.arange(15).reshape(3, 5), columns=[False, True, 2, 3, 4]) + mapper = {0: "foo", 1: "bar", 2: "bah"} + res = df.rename(index=mapper) + exp = DataFrame( + np.arange(15).reshape(3, 5), + columns=[False, True, 2, 3, 4], + index=["foo", "bar", "bah"], + ) + tm.assert_frame_equal(res, exp) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_rename_axis.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_rename_axis.py new file mode 100644 index 0000000000000000000000000000000000000000..dd4a77c6509b8de7eb767bb44238004399c159a4 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_rename_axis.py @@ -0,0 +1,111 @@ +import numpy as np +import pytest + +from pandas import ( + DataFrame, + Index, + MultiIndex, +) +import pandas._testing as tm + + +class TestDataFrameRenameAxis: + def test_rename_axis_inplace(self, float_frame): + # GH#15704 + expected = float_frame.rename_axis("foo") + result = float_frame.copy() + return_value = no_return = result.rename_axis("foo", inplace=True) + assert return_value is None + + assert no_return is None + tm.assert_frame_equal(result, expected) + + expected = float_frame.rename_axis("bar", axis=1) + result = float_frame.copy() + return_value = no_return = result.rename_axis("bar", axis=1, inplace=True) + assert return_value is None + + assert no_return is None + tm.assert_frame_equal(result, expected) + + def test_rename_axis_raises(self): + # GH#17833 + df = DataFrame({"A": [1, 2], "B": [1, 2]}) + with pytest.raises(ValueError, match="Use `.rename`"): + df.rename_axis(id, axis=0) + + with pytest.raises(ValueError, match="Use `.rename`"): + df.rename_axis({0: 10, 1: 20}, axis=0) + + with pytest.raises(ValueError, match="Use `.rename`"): + df.rename_axis(id, axis=1) + + with pytest.raises(ValueError, match="Use `.rename`"): + df["A"].rename_axis(id) + + def test_rename_axis_mapper(self): + # GH#19978 + mi = MultiIndex.from_product([["a", "b", "c"], [1, 2]], names=["ll", "nn"]) + df = DataFrame( + {"x": list(range(len(mi))), "y": [i * 10 for i in range(len(mi))]}, index=mi + ) + + # Test for rename of the Index object of columns + result = df.rename_axis("cols", axis=1) + tm.assert_index_equal(result.columns, Index(["x", "y"], name="cols")) + + # Test for rename of the Index object of columns using dict + result = result.rename_axis(columns={"cols": "new"}, axis=1) + tm.assert_index_equal(result.columns, Index(["x", "y"], name="new")) + + # Test for renaming index using dict + result = df.rename_axis(index={"ll": "foo"}) + assert result.index.names == ["foo", "nn"] + + # Test for renaming index using a function + result = df.rename_axis(index=str.upper, axis=0) + assert result.index.names == ["LL", "NN"] + + # Test for renaming index providing complete list + result = df.rename_axis(index=["foo", "goo"]) + assert result.index.names == ["foo", "goo"] + + # Test for changing index and columns at same time + sdf = df.reset_index().set_index("nn").drop(columns=["ll", "y"]) + result = sdf.rename_axis(index="foo", columns="meh") + assert result.index.name == "foo" + assert result.columns.name == "meh" + + # Test different error cases + with pytest.raises(TypeError, match="Must pass"): + df.rename_axis(index="wrong") + + with pytest.raises(ValueError, match="Length of names"): + df.rename_axis(index=["wrong"]) + + with pytest.raises(TypeError, match="bogus"): + df.rename_axis(bogus=None) + + @pytest.mark.parametrize( + "kwargs, rename_index, rename_columns", + [ + ({"mapper": None, "axis": 0}, True, False), + ({"mapper": None, "axis": 1}, False, True), + ({"index": None}, True, False), + ({"columns": None}, False, True), + ({"index": None, "columns": None}, True, True), + ({}, False, False), + ], + ) + def test_rename_axis_none(self, kwargs, rename_index, rename_columns): + # GH 25034 + index = Index(list("abc"), name="foo") + columns = Index(["col1", "col2"], name="bar") + data = np.arange(6).reshape(3, 2) + df = DataFrame(data, index, columns) + + result = df.rename_axis(**kwargs) + expected_index = index.rename(None) if rename_index else index + expected_columns = columns.rename(None) if rename_columns else columns + expected = DataFrame(data, expected_index, expected_columns) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_reorder_levels.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_reorder_levels.py new file mode 100644 index 0000000000000000000000000000000000000000..5d6b65daae4d513b3d3333856a57a2199cb79ed0 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_reorder_levels.py @@ -0,0 +1,74 @@ +import numpy as np +import pytest + +from pandas import ( + DataFrame, + MultiIndex, +) +import pandas._testing as tm + + +class TestReorderLevels: + def test_reorder_levels(self, frame_or_series): + index = MultiIndex( + levels=[["bar"], ["one", "two", "three"], [0, 1]], + codes=[[0, 0, 0, 0, 0, 0], [0, 1, 2, 0, 1, 2], [0, 1, 0, 1, 0, 1]], + names=["L0", "L1", "L2"], + ) + df = DataFrame({"A": np.arange(6), "B": np.arange(6)}, index=index) + obj = tm.get_obj(df, frame_or_series) + + # no change, position + result = obj.reorder_levels([0, 1, 2]) + tm.assert_equal(obj, result) + + # no change, labels + result = obj.reorder_levels(["L0", "L1", "L2"]) + tm.assert_equal(obj, result) + + # rotate, position + result = obj.reorder_levels([1, 2, 0]) + e_idx = MultiIndex( + levels=[["one", "two", "three"], [0, 1], ["bar"]], + codes=[[0, 1, 2, 0, 1, 2], [0, 1, 0, 1, 0, 1], [0, 0, 0, 0, 0, 0]], + names=["L1", "L2", "L0"], + ) + expected = DataFrame({"A": np.arange(6), "B": np.arange(6)}, index=e_idx) + expected = tm.get_obj(expected, frame_or_series) + tm.assert_equal(result, expected) + + result = obj.reorder_levels([0, 0, 0]) + e_idx = MultiIndex( + levels=[["bar"], ["bar"], ["bar"]], + codes=[[0, 0, 0, 0, 0, 0], [0, 0, 0, 0, 0, 0], [0, 0, 0, 0, 0, 0]], + names=["L0", "L0", "L0"], + ) + expected = DataFrame({"A": np.arange(6), "B": np.arange(6)}, index=e_idx) + expected = tm.get_obj(expected, frame_or_series) + tm.assert_equal(result, expected) + + result = obj.reorder_levels(["L0", "L0", "L0"]) + tm.assert_equal(result, expected) + + def test_reorder_levels_swaplevel_equivalence( + self, multiindex_year_month_day_dataframe_random_data + ): + ymd = multiindex_year_month_day_dataframe_random_data + + result = ymd.reorder_levels(["month", "day", "year"]) + expected = ymd.swaplevel(0, 1).swaplevel(1, 2) + tm.assert_frame_equal(result, expected) + + result = ymd["A"].reorder_levels(["month", "day", "year"]) + expected = ymd["A"].swaplevel(0, 1).swaplevel(1, 2) + tm.assert_series_equal(result, expected) + + result = ymd.T.reorder_levels(["month", "day", "year"], axis=1) + expected = ymd.T.swaplevel(0, 1, axis=1).swaplevel(1, 2, axis=1) + tm.assert_frame_equal(result, expected) + + with pytest.raises(TypeError, match="hierarchical axis"): + ymd.reorder_levels([1, 2], axis=1) + + with pytest.raises(IndexError, match="Too many levels"): + ymd.index.reorder_levels([1, 2, 3]) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_replace.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_replace.py new file mode 100644 index 0000000000000000000000000000000000000000..0971fb7e604c0da7bf517936d68c938eb10748a1 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_replace.py @@ -0,0 +1,1665 @@ +from __future__ import annotations + +from datetime import datetime +import re + +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + DataFrame, + Index, + Series, + Timestamp, + date_range, +) +import pandas._testing as tm + + +@pytest.fixture +def mix_ab() -> dict[str, list[int | str]]: + return {"a": list(range(4)), "b": list("ab..")} + + +@pytest.fixture +def mix_abc() -> dict[str, list[float | str]]: + return {"a": list(range(4)), "b": list("ab.."), "c": ["a", "b", np.nan, "d"]} + + +class TestDataFrameReplace: + def test_replace_inplace(self, datetime_frame, float_string_frame): + datetime_frame.loc[datetime_frame.index[:5], "A"] = np.nan + datetime_frame.loc[datetime_frame.index[-5:], "A"] = np.nan + + tsframe = datetime_frame.copy() + return_value = tsframe.replace(np.nan, 0, inplace=True) + assert return_value is None + tm.assert_frame_equal(tsframe, datetime_frame.fillna(0)) + + # mixed type + mf = float_string_frame + mf.iloc[5:20, mf.columns.get_loc("foo")] = np.nan + mf.iloc[-10:, mf.columns.get_loc("A")] = np.nan + + result = float_string_frame.replace(np.nan, 0) + expected = float_string_frame.copy() + expected["foo"] = expected["foo"].astype(object) + expected = expected.fillna(value=0) + tm.assert_frame_equal(result, expected) + + tsframe = datetime_frame.copy() + return_value = tsframe.replace([np.nan], [0], inplace=True) + assert return_value is None + tm.assert_frame_equal(tsframe, datetime_frame.fillna(0)) + + @pytest.mark.parametrize( + "to_replace,values,expected", + [ + # lists of regexes and values + # list of [re1, re2, ..., reN] -> [v1, v2, ..., vN] + ( + [r"\s*\.\s*", r"e|f|g"], + [np.nan, "crap"], + { + "a": ["a", "b", np.nan, np.nan], + "b": ["crap"] * 3 + ["h"], + "c": ["h", "crap", "l", "o"], + }, + ), + # list of [re1, re2, ..., reN] -> [re1, re2, .., reN] + ( + [r"\s*(\.)\s*", r"(e|f|g)"], + [r"\1\1", r"\1_crap"], + { + "a": ["a", "b", "..", ".."], + "b": ["e_crap", "f_crap", "g_crap", "h"], + "c": ["h", "e_crap", "l", "o"], + }, + ), + # list of [re1, re2, ..., reN] -> [(re1 or v1), (re2 or v2), ..., (reN + # or vN)] + ( + [r"\s*(\.)\s*", r"e"], + [r"\1\1", r"crap"], + { + "a": ["a", "b", "..", ".."], + "b": ["crap", "f", "g", "h"], + "c": ["h", "crap", "l", "o"], + }, + ), + ], + ) + @pytest.mark.parametrize("inplace", [True, False]) + @pytest.mark.parametrize("use_value_regex_args", [True, False]) + def test_regex_replace_list_obj( + self, to_replace, values, expected, inplace, use_value_regex_args + ): + df = DataFrame({"a": list("ab.."), "b": list("efgh"), "c": list("helo")}) + + if use_value_regex_args: + result = df.replace(value=values, regex=to_replace, inplace=inplace) + else: + result = df.replace(to_replace, values, regex=True, inplace=inplace) + + if inplace: + assert result is None + result = df + + expected = DataFrame(expected) + tm.assert_frame_equal(result, expected) + + def test_regex_replace_list_mixed(self, mix_ab): + # mixed frame to make sure this doesn't break things + dfmix = DataFrame(mix_ab) + + # lists of regexes and values + # list of [re1, re2, ..., reN] -> [v1, v2, ..., vN] + to_replace_res = [r"\s*\.\s*", r"a"] + values = [np.nan, "crap"] + mix2 = {"a": list(range(4)), "b": list("ab.."), "c": list("halo")} + dfmix2 = DataFrame(mix2) + res = dfmix2.replace(to_replace_res, values, regex=True) + expec = DataFrame( + { + "a": mix2["a"], + "b": ["crap", "b", np.nan, np.nan], + "c": ["h", "crap", "l", "o"], + } + ) + tm.assert_frame_equal(res, expec) + + # list of [re1, re2, ..., reN] -> [re1, re2, .., reN] + to_replace_res = [r"\s*(\.)\s*", r"(a|b)"] + values = [r"\1\1", r"\1_crap"] + res = dfmix.replace(to_replace_res, values, regex=True) + expec = DataFrame({"a": mix_ab["a"], "b": ["a_crap", "b_crap", "..", ".."]}) + tm.assert_frame_equal(res, expec) + + # list of [re1, re2, ..., reN] -> [(re1 or v1), (re2 or v2), ..., (reN + # or vN)] + to_replace_res = [r"\s*(\.)\s*", r"a", r"(b)"] + values = [r"\1\1", r"crap", r"\1_crap"] + res = dfmix.replace(to_replace_res, values, regex=True) + expec = DataFrame({"a": mix_ab["a"], "b": ["crap", "b_crap", "..", ".."]}) + tm.assert_frame_equal(res, expec) + + to_replace_res = [r"\s*(\.)\s*", r"a", r"(b)"] + values = [r"\1\1", r"crap", r"\1_crap"] + res = dfmix.replace(regex=to_replace_res, value=values) + expec = DataFrame({"a": mix_ab["a"], "b": ["crap", "b_crap", "..", ".."]}) + tm.assert_frame_equal(res, expec) + + def test_regex_replace_list_mixed_inplace(self, mix_ab): + dfmix = DataFrame(mix_ab) + # the same inplace + # lists of regexes and values + # list of [re1, re2, ..., reN] -> [v1, v2, ..., vN] + to_replace_res = [r"\s*\.\s*", r"a"] + values = [np.nan, "crap"] + res = dfmix.copy() + return_value = res.replace(to_replace_res, values, inplace=True, regex=True) + assert return_value is None + expec = DataFrame({"a": mix_ab["a"], "b": ["crap", "b", np.nan, np.nan]}) + tm.assert_frame_equal(res, expec) + + # list of [re1, re2, ..., reN] -> [re1, re2, .., reN] + to_replace_res = [r"\s*(\.)\s*", r"(a|b)"] + values = [r"\1\1", r"\1_crap"] + res = dfmix.copy() + return_value = res.replace(to_replace_res, values, inplace=True, regex=True) + assert return_value is None + expec = DataFrame({"a": mix_ab["a"], "b": ["a_crap", "b_crap", "..", ".."]}) + tm.assert_frame_equal(res, expec) + + # list of [re1, re2, ..., reN] -> [(re1 or v1), (re2 or v2), ..., (reN + # or vN)] + to_replace_res = [r"\s*(\.)\s*", r"a", r"(b)"] + values = [r"\1\1", r"crap", r"\1_crap"] + res = dfmix.copy() + return_value = res.replace(to_replace_res, values, inplace=True, regex=True) + assert return_value is None + expec = DataFrame({"a": mix_ab["a"], "b": ["crap", "b_crap", "..", ".."]}) + tm.assert_frame_equal(res, expec) + + to_replace_res = [r"\s*(\.)\s*", r"a", r"(b)"] + values = [r"\1\1", r"crap", r"\1_crap"] + res = dfmix.copy() + return_value = res.replace(regex=to_replace_res, value=values, inplace=True) + assert return_value is None + expec = DataFrame({"a": mix_ab["a"], "b": ["crap", "b_crap", "..", ".."]}) + tm.assert_frame_equal(res, expec) + + def test_regex_replace_dict_mixed(self, mix_abc): + dfmix = DataFrame(mix_abc) + + # dicts + # single dict {re1: v1}, search the whole frame + # need test for this... + + # list of dicts {re1: v1, re2: v2, ..., re3: v3}, search the whole + # frame + res = dfmix.replace({"b": r"\s*\.\s*"}, {"b": np.nan}, regex=True) + res2 = dfmix.copy() + return_value = res2.replace( + {"b": r"\s*\.\s*"}, {"b": np.nan}, inplace=True, regex=True + ) + assert return_value is None + expec = DataFrame( + {"a": mix_abc["a"], "b": ["a", "b", np.nan, np.nan], "c": mix_abc["c"]} + ) + tm.assert_frame_equal(res, expec) + tm.assert_frame_equal(res2, expec) + + # list of dicts {re1: re11, re2: re12, ..., reN: re1N}, search the + # whole frame + res = dfmix.replace({"b": r"\s*(\.)\s*"}, {"b": r"\1ty"}, regex=True) + res2 = dfmix.copy() + return_value = res2.replace( + {"b": r"\s*(\.)\s*"}, {"b": r"\1ty"}, inplace=True, regex=True + ) + assert return_value is None + expec = DataFrame( + {"a": mix_abc["a"], "b": ["a", "b", ".ty", ".ty"], "c": mix_abc["c"]} + ) + tm.assert_frame_equal(res, expec) + tm.assert_frame_equal(res2, expec) + + res = dfmix.replace(regex={"b": r"\s*(\.)\s*"}, value={"b": r"\1ty"}) + res2 = dfmix.copy() + return_value = res2.replace( + regex={"b": r"\s*(\.)\s*"}, value={"b": r"\1ty"}, inplace=True + ) + assert return_value is None + expec = DataFrame( + {"a": mix_abc["a"], "b": ["a", "b", ".ty", ".ty"], "c": mix_abc["c"]} + ) + tm.assert_frame_equal(res, expec) + tm.assert_frame_equal(res2, expec) + + # scalar -> dict + # to_replace regex, {value: value} + expec = DataFrame( + {"a": mix_abc["a"], "b": [np.nan, "b", ".", "."], "c": mix_abc["c"]} + ) + res = dfmix.replace("a", {"b": np.nan}, regex=True) + res2 = dfmix.copy() + return_value = res2.replace("a", {"b": np.nan}, regex=True, inplace=True) + assert return_value is None + tm.assert_frame_equal(res, expec) + tm.assert_frame_equal(res2, expec) + + res = dfmix.replace("a", {"b": np.nan}, regex=True) + res2 = dfmix.copy() + return_value = res2.replace(regex="a", value={"b": np.nan}, inplace=True) + assert return_value is None + expec = DataFrame( + {"a": mix_abc["a"], "b": [np.nan, "b", ".", "."], "c": mix_abc["c"]} + ) + tm.assert_frame_equal(res, expec) + tm.assert_frame_equal(res2, expec) + + def test_regex_replace_dict_nested(self, mix_abc): + # nested dicts will not work until this is implemented for Series + dfmix = DataFrame(mix_abc) + res = dfmix.replace({"b": {r"\s*\.\s*": np.nan}}, regex=True) + res2 = dfmix.copy() + res4 = dfmix.copy() + return_value = res2.replace( + {"b": {r"\s*\.\s*": np.nan}}, inplace=True, regex=True + ) + assert return_value is None + res3 = dfmix.replace(regex={"b": {r"\s*\.\s*": np.nan}}) + return_value = res4.replace(regex={"b": {r"\s*\.\s*": np.nan}}, inplace=True) + assert return_value is None + expec = DataFrame( + {"a": mix_abc["a"], "b": ["a", "b", np.nan, np.nan], "c": mix_abc["c"]} + ) + tm.assert_frame_equal(res, expec) + tm.assert_frame_equal(res2, expec) + tm.assert_frame_equal(res3, expec) + tm.assert_frame_equal(res4, expec) + + def test_regex_replace_dict_nested_non_first_character(self, any_string_dtype): + # GH 25259 + dtype = any_string_dtype + df = DataFrame({"first": ["abc", "bca", "cab"]}, dtype=dtype) + result = df.replace({"a": "."}, regex=True) + expected = DataFrame({"first": [".bc", "bc.", "c.b"]}, dtype=dtype) + tm.assert_frame_equal(result, expected) + + def test_regex_replace_dict_nested_gh4115(self): + df = DataFrame( + {"Type": Series(["Q", "T", "Q", "Q", "T"], dtype=object), "tmp": 2} + ) + expected = DataFrame({"Type": [0, 1, 0, 0, 1], "tmp": 2}) + msg = "Downcasting behavior in `replace`" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.replace({"Type": {"Q": 0, "T": 1}}) + + tm.assert_frame_equal(result, expected) + + def test_regex_replace_list_to_scalar(self, mix_abc, using_infer_string): + df = DataFrame(mix_abc) + expec = DataFrame( + { + "a": mix_abc["a"], + "b": [np.nan] * 4, + "c": [np.nan, np.nan, np.nan, "d"], + } + ) + if using_infer_string: + expec["b"] = expec["b"].astype("str") + msg = "Downcasting behavior in `replace`" + warn = None if using_infer_string else FutureWarning + with tm.assert_produces_warning(warn, match=msg): + res = df.replace([r"\s*\.\s*", "a|b"], np.nan, regex=True) + res2 = df.copy() + res3 = df.copy() + with tm.assert_produces_warning(warn, match=msg): + return_value = res2.replace( + [r"\s*\.\s*", "a|b"], np.nan, regex=True, inplace=True + ) + assert return_value is None + with tm.assert_produces_warning(warn, match=msg): + return_value = res3.replace( + regex=[r"\s*\.\s*", "a|b"], value=np.nan, inplace=True + ) + assert return_value is None + tm.assert_frame_equal(res, expec) + tm.assert_frame_equal(res2, expec) + tm.assert_frame_equal(res3, expec) + + def test_regex_replace_str_to_numeric(self, mix_abc): + # what happens when you try to replace a numeric value with a regex? + df = DataFrame(mix_abc) + res = df.replace(r"\s*\.\s*", 0, regex=True) + res2 = df.copy() + return_value = res2.replace(r"\s*\.\s*", 0, inplace=True, regex=True) + assert return_value is None + res3 = df.copy() + return_value = res3.replace(regex=r"\s*\.\s*", value=0, inplace=True) + assert return_value is None + expec = DataFrame({"a": mix_abc["a"], "b": ["a", "b", 0, 0], "c": mix_abc["c"]}) + tm.assert_frame_equal(res, expec) + tm.assert_frame_equal(res2, expec) + tm.assert_frame_equal(res3, expec) + + def test_regex_replace_regex_list_to_numeric(self, mix_abc): + df = DataFrame(mix_abc) + res = df.replace([r"\s*\.\s*", "b"], 0, regex=True) + res2 = df.copy() + return_value = res2.replace([r"\s*\.\s*", "b"], 0, regex=True, inplace=True) + assert return_value is None + res3 = df.copy() + return_value = res3.replace(regex=[r"\s*\.\s*", "b"], value=0, inplace=True) + assert return_value is None + expec = DataFrame( + {"a": mix_abc["a"], "b": ["a", 0, 0, 0], "c": ["a", 0, np.nan, "d"]} + ) + tm.assert_frame_equal(res, expec) + tm.assert_frame_equal(res2, expec) + tm.assert_frame_equal(res3, expec) + + def test_regex_replace_series_of_regexes(self, mix_abc): + df = DataFrame(mix_abc) + s1 = Series({"b": r"\s*\.\s*"}) + s2 = Series({"b": np.nan}) + res = df.replace(s1, s2, regex=True) + res2 = df.copy() + return_value = res2.replace(s1, s2, inplace=True, regex=True) + assert return_value is None + res3 = df.copy() + return_value = res3.replace(regex=s1, value=s2, inplace=True) + assert return_value is None + expec = DataFrame( + {"a": mix_abc["a"], "b": ["a", "b", np.nan, np.nan], "c": mix_abc["c"]} + ) + tm.assert_frame_equal(res, expec) + tm.assert_frame_equal(res2, expec) + tm.assert_frame_equal(res3, expec) + + def test_regex_replace_numeric_to_object_conversion(self, mix_abc): + df = DataFrame(mix_abc) + expec = DataFrame({"a": ["a", 1, 2, 3], "b": mix_abc["b"], "c": mix_abc["c"]}) + res = df.replace(0, "a") + tm.assert_frame_equal(res, expec) + assert res.a.dtype == np.object_ + + @pytest.mark.parametrize( + "to_replace", [{"": np.nan, ",": ""}, {",": "", "": np.nan}] + ) + def test_joint_simple_replace_and_regex_replace(self, to_replace): + # GH-39338 + df = DataFrame( + { + "col1": ["1,000", "a", "3"], + "col2": ["a", "", "b"], + "col3": ["a", "b", "c"], + } + ) + result = df.replace(regex=to_replace) + expected = DataFrame( + { + "col1": ["1000", "a", "3"], + "col2": ["a", np.nan, "b"], + "col3": ["a", "b", "c"], + } + ) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("metachar", ["[]", "()", r"\d", r"\w", r"\s"]) + def test_replace_regex_metachar(self, metachar): + df = DataFrame({"a": [metachar, "else"]}) + result = df.replace({"a": {metachar: "paren"}}) + expected = DataFrame({"a": ["paren", "else"]}) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "data,to_replace,expected", + [ + (["xax", "xbx"], {"a": "c", "b": "d"}, ["xcx", "xdx"]), + (["d", "", ""], {r"^\s*$": pd.NA}, ["d", pd.NA, pd.NA]), + ], + ) + def test_regex_replace_string_types( + self, data, to_replace, expected, frame_or_series, any_string_dtype + ): + # GH-41333, GH-35977 + dtype = any_string_dtype + obj = frame_or_series(data, dtype=dtype) + result = obj.replace(to_replace, regex=True) + expected = frame_or_series(expected, dtype=dtype) + + tm.assert_equal(result, expected) + + def test_replace(self, datetime_frame): + datetime_frame.loc[datetime_frame.index[:5], "A"] = np.nan + datetime_frame.loc[datetime_frame.index[-5:], "A"] = np.nan + + zero_filled = datetime_frame.replace(np.nan, -1e8) + tm.assert_frame_equal(zero_filled, datetime_frame.fillna(-1e8)) + tm.assert_frame_equal(zero_filled.replace(-1e8, np.nan), datetime_frame) + + datetime_frame.loc[datetime_frame.index[:5], "A"] = np.nan + datetime_frame.loc[datetime_frame.index[-5:], "A"] = np.nan + datetime_frame.loc[datetime_frame.index[:5], "B"] = -1e8 + + # empty + df = DataFrame(index=["a", "b"]) + tm.assert_frame_equal(df, df.replace(5, 7)) + + # GH 11698 + # test for mixed data types. + df = DataFrame( + [("-", pd.to_datetime("20150101")), ("a", pd.to_datetime("20150102"))] + ) + df1 = df.replace("-", np.nan) + expected_df = DataFrame( + [(np.nan, pd.to_datetime("20150101")), ("a", pd.to_datetime("20150102"))] + ) + tm.assert_frame_equal(df1, expected_df) + + def test_replace_list(self): + obj = {"a": list("ab.."), "b": list("efgh"), "c": list("helo")} + dfobj = DataFrame(obj) + + # lists of regexes and values + # list of [v1, v2, ..., vN] -> [v1, v2, ..., vN] + to_replace_res = [r".", r"e"] + values = [np.nan, "crap"] + res = dfobj.replace(to_replace_res, values) + expec = DataFrame( + { + "a": ["a", "b", np.nan, np.nan], + "b": ["crap", "f", "g", "h"], + "c": ["h", "crap", "l", "o"], + } + ) + tm.assert_frame_equal(res, expec) + + # list of [v1, v2, ..., vN] -> [v1, v2, .., vN] + to_replace_res = [r".", r"f"] + values = [r"..", r"crap"] + res = dfobj.replace(to_replace_res, values) + expec = DataFrame( + { + "a": ["a", "b", "..", ".."], + "b": ["e", "crap", "g", "h"], + "c": ["h", "e", "l", "o"], + } + ) + tm.assert_frame_equal(res, expec) + + def test_replace_with_empty_list(self, frame_or_series): + # GH 21977 + ser = Series([["a", "b"], [], np.nan, [1]]) + obj = DataFrame({"col": ser}) + obj = tm.get_obj(obj, frame_or_series) + expected = obj + result = obj.replace([], np.nan) + tm.assert_equal(result, expected) + + # GH 19266 + msg = ( + "NumPy boolean array indexing assignment cannot assign {size} " + "input values to the 1 output values where the mask is true" + ) + with pytest.raises(ValueError, match=msg.format(size=0)): + obj.replace({np.nan: []}) + with pytest.raises(ValueError, match=msg.format(size=2)): + obj.replace({np.nan: ["dummy", "alt"]}) + + def test_replace_series_dict(self): + # from GH 3064 + df = DataFrame({"zero": {"a": 0.0, "b": 1}, "one": {"a": 2.0, "b": 0}}) + result = df.replace(0, {"zero": 0.5, "one": 1.0}) + expected = DataFrame({"zero": {"a": 0.5, "b": 1}, "one": {"a": 2.0, "b": 1.0}}) + tm.assert_frame_equal(result, expected) + + result = df.replace(0, df.mean()) + tm.assert_frame_equal(result, expected) + + # series to series/dict + df = DataFrame({"zero": {"a": 0.0, "b": 1}, "one": {"a": 2.0, "b": 0}}) + s = Series({"zero": 0.0, "one": 2.0}) + result = df.replace(s, {"zero": 0.5, "one": 1.0}) + expected = DataFrame({"zero": {"a": 0.5, "b": 1}, "one": {"a": 1.0, "b": 0.0}}) + tm.assert_frame_equal(result, expected) + + result = df.replace(s, df.mean()) + tm.assert_frame_equal(result, expected) + + def test_replace_convert(self): + # gh 3907 + df = DataFrame([["foo", "bar", "bah"], ["bar", "foo", "bah"]]) + m = {"foo": 1, "bar": 2, "bah": 3} + msg = "Downcasting behavior in `replace` " + with tm.assert_produces_warning(FutureWarning, match=msg): + rep = df.replace(m) + expec = Series([np.int64] * 3) + res = rep.dtypes + tm.assert_series_equal(expec, res) + + def test_replace_mixed(self, float_string_frame): + mf = float_string_frame + mf.iloc[5:20, mf.columns.get_loc("foo")] = np.nan + mf.iloc[-10:, mf.columns.get_loc("A")] = np.nan + + result = float_string_frame.replace(np.nan, -18) + expected = float_string_frame.copy() + expected["foo"] = expected["foo"].astype(object) + expected = expected.fillna(value=-18) + tm.assert_frame_equal(result, expected) + expected2 = float_string_frame.copy() + expected2["foo"] = expected2["foo"].astype(object) + tm.assert_frame_equal(result.replace(-18, np.nan), expected2) + + result = float_string_frame.replace(np.nan, -1e8) + expected = float_string_frame.copy() + expected["foo"] = expected["foo"].astype(object) + expected = expected.fillna(value=-1e8) + tm.assert_frame_equal(result, expected) + expected2 = float_string_frame.copy() + expected2["foo"] = expected2["foo"].astype(object) + tm.assert_frame_equal(result.replace(-1e8, np.nan), expected2) + + def test_replace_mixed_int_block_upcasting(self): + # int block upcasting + df = DataFrame( + { + "A": Series([1.0, 2.0], dtype="float64"), + "B": Series([0, 1], dtype="int64"), + } + ) + expected = DataFrame( + { + "A": Series([1.0, 2.0], dtype="float64"), + "B": Series([0.5, 1], dtype="float64"), + } + ) + result = df.replace(0, 0.5) + tm.assert_frame_equal(result, expected) + + return_value = df.replace(0, 0.5, inplace=True) + assert return_value is None + tm.assert_frame_equal(df, expected) + + def test_replace_mixed_int_block_splitting(self): + # int block splitting + df = DataFrame( + { + "A": Series([1.0, 2.0], dtype="float64"), + "B": Series([0, 1], dtype="int64"), + "C": Series([1, 2], dtype="int64"), + } + ) + expected = DataFrame( + { + "A": Series([1.0, 2.0], dtype="float64"), + "B": Series([0.5, 1], dtype="float64"), + "C": Series([1, 2], dtype="int64"), + } + ) + result = df.replace(0, 0.5) + tm.assert_frame_equal(result, expected) + + def test_replace_mixed2(self, using_infer_string): + # to object block upcasting + df = DataFrame( + { + "A": Series([1.0, 2.0], dtype="float64"), + "B": Series([0, 1], dtype="int64"), + } + ) + expected = DataFrame( + { + "A": Series([1, "foo"], dtype="object"), + "B": Series([0, 1], dtype="int64"), + } + ) + result = df.replace(2, "foo") + tm.assert_frame_equal(result, expected) + + expected = DataFrame( + { + "A": Series(["foo", "bar"], dtype="object"), + "B": Series([0, "foo"], dtype="object"), + } + ) + result = df.replace([1, 2], ["foo", "bar"]) + tm.assert_frame_equal(result, expected) + + def test_replace_mixed3(self): + # test case from + df = DataFrame( + {"A": Series([3, 0], dtype="int64"), "B": Series([0, 3], dtype="int64")} + ) + result = df.replace(3, df.mean().to_dict()) + expected = df.copy().astype("float64") + m = df.mean() + expected.iloc[0, 0] = m.iloc[0] + expected.iloc[1, 1] = m.iloc[1] + tm.assert_frame_equal(result, expected) + + def test_replace_nullable_int_with_string_doesnt_cast(self): + # GH#25438 don't cast df['a'] to float64 + df = DataFrame({"a": [1, 2, 3, np.nan], "b": ["some", "strings", "here", "he"]}) + df["a"] = df["a"].astype("Int64") + + res = df.replace("", np.nan) + tm.assert_series_equal(res["a"], df["a"]) + + @pytest.mark.parametrize("dtype", ["boolean", "Int64", "Float64"]) + def test_replace_with_nullable_column(self, dtype): + # GH-44499 + nullable_ser = Series([1, 0, 1], dtype=dtype) + df = DataFrame({"A": ["A", "B", "x"], "B": nullable_ser}) + result = df.replace("x", "X") + expected = DataFrame({"A": ["A", "B", "X"], "B": nullable_ser}) + tm.assert_frame_equal(result, expected) + + def test_replace_simple_nested_dict(self): + df = DataFrame({"col": range(1, 5)}) + expected = DataFrame({"col": ["a", 2, 3, "b"]}) + + result = df.replace({"col": {1: "a", 4: "b"}}) + tm.assert_frame_equal(expected, result) + + # in this case, should be the same as the not nested version + result = df.replace({1: "a", 4: "b"}) + tm.assert_frame_equal(expected, result) + + def test_replace_simple_nested_dict_with_nonexistent_value(self): + df = DataFrame({"col": range(1, 5)}) + expected = DataFrame({"col": ["a", 2, 3, "b"]}) + + result = df.replace({-1: "-", 1: "a", 4: "b"}) + tm.assert_frame_equal(expected, result) + + result = df.replace({"col": {-1: "-", 1: "a", 4: "b"}}) + tm.assert_frame_equal(expected, result) + + def test_replace_NA_with_None(self): + # gh-45601 + df = DataFrame({"value": [42, None]}).astype({"value": "Int64"}) + result = df.replace({pd.NA: None}) + expected = DataFrame({"value": [42, None]}, dtype=object) + tm.assert_frame_equal(result, expected) + + def test_replace_NAT_with_None(self): + # gh-45836 + df = DataFrame([pd.NaT, pd.NaT]) + result = df.replace({pd.NaT: None, np.nan: None}) + expected = DataFrame([None, None]) + tm.assert_frame_equal(result, expected) + + def test_replace_with_None_keeps_categorical(self): + # gh-46634 + cat_series = Series(["b", "b", "b", "d"], dtype="category") + df = DataFrame( + { + "id": Series([5, 4, 3, 2], dtype="float64"), + "col": cat_series, + } + ) + result = df.replace({3: None}) + + expected = DataFrame( + { + "id": Series([5.0, 4.0, None, 2.0], dtype="object"), + "col": cat_series, + } + ) + tm.assert_frame_equal(result, expected) + + def test_replace_value_is_none(self, datetime_frame): + orig_value = datetime_frame.iloc[0, 0] + orig2 = datetime_frame.iloc[1, 0] + + datetime_frame.iloc[0, 0] = np.nan + datetime_frame.iloc[1, 0] = 1 + + result = datetime_frame.replace(to_replace={np.nan: 0}) + expected = datetime_frame.T.replace(to_replace={np.nan: 0}).T + tm.assert_frame_equal(result, expected) + + result = datetime_frame.replace(to_replace={np.nan: 0, 1: -1e8}) + tsframe = datetime_frame.copy() + tsframe.iloc[0, 0] = 0 + tsframe.iloc[1, 0] = -1e8 + expected = tsframe + tm.assert_frame_equal(expected, result) + datetime_frame.iloc[0, 0] = orig_value + datetime_frame.iloc[1, 0] = orig2 + + def test_replace_for_new_dtypes(self, datetime_frame): + # dtypes + tsframe = datetime_frame.copy().astype(np.float32) + tsframe.loc[tsframe.index[:5], "A"] = np.nan + tsframe.loc[tsframe.index[-5:], "A"] = np.nan + + zero_filled = tsframe.replace(np.nan, -1e8) + tm.assert_frame_equal(zero_filled, tsframe.fillna(-1e8)) + tm.assert_frame_equal(zero_filled.replace(-1e8, np.nan), tsframe) + + tsframe.loc[tsframe.index[:5], "A"] = np.nan + tsframe.loc[tsframe.index[-5:], "A"] = np.nan + tsframe.loc[tsframe.index[:5], "B"] = np.nan + msg = "DataFrame.fillna with 'method' is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + # TODO: what is this even testing? + result = tsframe.fillna(method="bfill") + tm.assert_frame_equal(result, tsframe.fillna(method="bfill")) + + @pytest.mark.parametrize( + "frame, to_replace, value, expected", + [ + (DataFrame({"ints": [1, 2, 3]}), 1, 0, DataFrame({"ints": [0, 2, 3]})), + ( + DataFrame({"ints": [1, 2, 3]}, dtype=np.int32), + 1, + 0, + DataFrame({"ints": [0, 2, 3]}, dtype=np.int32), + ), + ( + DataFrame({"ints": [1, 2, 3]}, dtype=np.int16), + 1, + 0, + DataFrame({"ints": [0, 2, 3]}, dtype=np.int16), + ), + ( + DataFrame({"bools": [True, False, True]}), + False, + True, + DataFrame({"bools": [True, True, True]}), + ), + ( + DataFrame({"complex": [1j, 2j, 3j]}), + 1j, + 0, + DataFrame({"complex": [0j, 2j, 3j]}), + ), + ( + DataFrame( + { + "datetime64": Index( + [ + datetime(2018, 5, 28), + datetime(2018, 7, 28), + datetime(2018, 5, 28), + ] + ) + } + ), + datetime(2018, 5, 28), + datetime(2018, 7, 28), + DataFrame({"datetime64": Index([datetime(2018, 7, 28)] * 3)}), + ), + # GH 20380 + ( + DataFrame({"dt": [datetime(3017, 12, 20)], "str": ["foo"]}), + "foo", + "bar", + DataFrame({"dt": [datetime(3017, 12, 20)], "str": ["bar"]}), + ), + # GH 36782 + ( + DataFrame({"dt": [datetime(2920, 10, 1)]}), + datetime(2920, 10, 1), + datetime(2020, 10, 1), + DataFrame({"dt": [datetime(2020, 10, 1)]}), + ), + ( + DataFrame( + { + "A": date_range("20130101", periods=3, tz="US/Eastern"), + "B": [0, np.nan, 2], + } + ), + Timestamp("20130102", tz="US/Eastern"), + Timestamp("20130104", tz="US/Eastern"), + DataFrame( + { + "A": pd.DatetimeIndex( + [ + Timestamp("20130101", tz="US/Eastern"), + Timestamp("20130104", tz="US/Eastern"), + Timestamp("20130103", tz="US/Eastern"), + ] + ).as_unit("ns"), + "B": [0, np.nan, 2], + } + ), + ), + # GH 35376 + ( + DataFrame([[1, 1.0], [2, 2.0]]), + 1.0, + 5, + DataFrame([[5, 5.0], [2, 2.0]]), + ), + ( + DataFrame([[1, 1.0], [2, 2.0]]), + 1, + 5, + DataFrame([[5, 5.0], [2, 2.0]]), + ), + ( + DataFrame([[1, 1.0], [2, 2.0]]), + 1.0, + 5.0, + DataFrame([[5, 5.0], [2, 2.0]]), + ), + ( + DataFrame([[1, 1.0], [2, 2.0]]), + 1, + 5.0, + DataFrame([[5, 5.0], [2, 2.0]]), + ), + ], + ) + def test_replace_dtypes(self, frame, to_replace, value, expected): + warn = None + if isinstance(to_replace, datetime) and to_replace.year == 2920: + warn = FutureWarning + msg = "Downcasting behavior in `replace` " + with tm.assert_produces_warning(warn, match=msg): + result = frame.replace(to_replace, value) + tm.assert_frame_equal(result, expected) + + def test_replace_input_formats_listlike(self): + # both dicts + to_rep = {"A": np.nan, "B": 0, "C": ""} + values = {"A": 0, "B": -1, "C": "missing"} + df = DataFrame( + {"A": [np.nan, 0, np.inf], "B": [0, 2, 5], "C": ["", "asdf", "fd"]} + ) + filled = df.replace(to_rep, values) + expected = {k: v.replace(to_rep[k], values[k]) for k, v in df.items()} + tm.assert_frame_equal(filled, DataFrame(expected)) + + result = df.replace([0, 2, 5], [5, 2, 0]) + expected = DataFrame( + {"A": [np.nan, 5, np.inf], "B": [5, 2, 0], "C": ["", "asdf", "fd"]} + ) + tm.assert_frame_equal(result, expected) + + # scalar to dict + values = {"A": 0, "B": -1, "C": "missing"} + df = DataFrame( + {"A": [np.nan, 0, np.nan], "B": [0, 2, 5], "C": ["", "asdf", "fd"]} + ) + filled = df.replace(np.nan, values) + expected = {k: v.replace(np.nan, values[k]) for k, v in df.items()} + tm.assert_frame_equal(filled, DataFrame(expected)) + + # list to list + to_rep = [np.nan, 0, ""] + values = [-2, -1, "missing"] + result = df.replace(to_rep, values) + expected = df.copy() + for rep, value in zip(to_rep, values): + return_value = expected.replace(rep, value, inplace=True) + assert return_value is None + tm.assert_frame_equal(result, expected) + + msg = r"Replacement lists must match in length\. Expecting 3 got 2" + with pytest.raises(ValueError, match=msg): + df.replace(to_rep, values[1:]) + + def test_replace_input_formats_scalar(self): + df = DataFrame( + {"A": [np.nan, 0, np.inf], "B": [0, 2, 5], "C": ["", "asdf", "fd"]} + ) + + # dict to scalar + to_rep = {"A": np.nan, "B": 0, "C": ""} + filled = df.replace(to_rep, 0) + expected = {k: v.replace(to_rep[k], 0) for k, v in df.items()} + tm.assert_frame_equal(filled, DataFrame(expected)) + + msg = "value argument must be scalar, dict, or Series" + with pytest.raises(TypeError, match=msg): + df.replace(to_rep, [np.nan, 0, ""]) + + # list to scalar + to_rep = [np.nan, 0, ""] + result = df.replace(to_rep, -1) + expected = df.copy() + for rep in to_rep: + return_value = expected.replace(rep, -1, inplace=True) + assert return_value is None + tm.assert_frame_equal(result, expected) + + def test_replace_limit(self): + # TODO + pass + + def test_replace_dict_no_regex(self, any_string_dtype): + answer = Series( + { + 0: "Strongly Agree", + 1: "Agree", + 2: "Neutral", + 3: "Disagree", + 4: "Strongly Disagree", + }, + dtype=any_string_dtype, + ) + weights = { + "Agree": 4, + "Disagree": 2, + "Neutral": 3, + "Strongly Agree": 5, + "Strongly Disagree": 1, + } + expected = Series({0: 5, 1: 4, 2: 3, 3: 2, 4: 1}) + msg = "Downcasting behavior in `replace` " + with tm.assert_produces_warning(FutureWarning, match=msg): + result = answer.replace(weights) + tm.assert_series_equal(result, expected) + + def test_replace_series_no_regex(self, any_string_dtype): + answer = Series( + { + 0: "Strongly Agree", + 1: "Agree", + 2: "Neutral", + 3: "Disagree", + 4: "Strongly Disagree", + }, + dtype=any_string_dtype, + ) + weights = Series( + { + "Agree": 4, + "Disagree": 2, + "Neutral": 3, + "Strongly Agree": 5, + "Strongly Disagree": 1, + } + ) + expected = Series({0: 5, 1: 4, 2: 3, 3: 2, 4: 1}) + msg = "Downcasting behavior in `replace` " + with tm.assert_produces_warning(FutureWarning, match=msg): + result = answer.replace(weights) + tm.assert_series_equal(result, expected) + + def test_replace_dict_tuple_list_ordering_remains_the_same(self): + df = DataFrame({"A": [np.nan, 1]}) + res1 = df.replace(to_replace={np.nan: 0, 1: -1e8}) + res2 = df.replace(to_replace=(1, np.nan), value=[-1e8, 0]) + res3 = df.replace(to_replace=[1, np.nan], value=[-1e8, 0]) + + expected = DataFrame({"A": [0, -1e8]}) + tm.assert_frame_equal(res1, res2) + tm.assert_frame_equal(res2, res3) + tm.assert_frame_equal(res3, expected) + + def test_replace_doesnt_replace_without_regex(self): + df = DataFrame( + { + "fol": [1, 2, 2, 3], + "T_opp": ["0", "vr", "0", "0"], + "T_Dir": ["0", "0", "0", "bt"], + "T_Enh": ["vo", "0", "0", "0"], + } + ) + res = df.replace({r"\D": 1}) + tm.assert_frame_equal(df, res) + + def test_replace_bool_with_string(self): + df = DataFrame({"a": [True, False], "b": list("ab")}) + result = df.replace(True, "a") + expected = DataFrame({"a": ["a", False], "b": df.b}) + tm.assert_frame_equal(result, expected) + + def test_replace_pure_bool_with_string_no_op(self): + df = DataFrame(np.random.default_rng(2).random((2, 2)) > 0.5) + result = df.replace("asdf", "fdsa") + tm.assert_frame_equal(df, result) + + def test_replace_bool_with_bool(self): + df = DataFrame(np.random.default_rng(2).random((2, 2)) > 0.5) + result = df.replace(False, True) + expected = DataFrame(np.ones((2, 2), dtype=bool)) + tm.assert_frame_equal(result, expected) + + def test_replace_with_dict_with_bool_keys(self): + df = DataFrame({0: [True, False], 1: [False, True]}) + result = df.replace({"asdf": "asdb", True: "yes"}) + expected = DataFrame({0: ["yes", False], 1: [False, "yes"]}) + tm.assert_frame_equal(result, expected) + + def test_replace_dict_strings_vs_ints(self): + # GH#34789 + df = DataFrame({"Y0": [1, 2], "Y1": [3, 4]}) + result = df.replace({"replace_string": "test"}) + + tm.assert_frame_equal(result, df) + + result = df["Y0"].replace({"replace_string": "test"}) + tm.assert_series_equal(result, df["Y0"]) + + def test_replace_truthy(self): + df = DataFrame({"a": [True, True]}) + r = df.replace([np.inf, -np.inf], np.nan) + e = df + tm.assert_frame_equal(r, e) + + def test_nested_dict_overlapping_keys_replace_int(self): + # GH 27660 keep behaviour consistent for simple dictionary and + # nested dictionary replacement + df = DataFrame({"a": list(range(1, 5))}) + + result = df.replace({"a": dict(zip(range(1, 5), range(2, 6)))}) + expected = df.replace(dict(zip(range(1, 5), range(2, 6)))) + tm.assert_frame_equal(result, expected) + + def test_nested_dict_overlapping_keys_replace_str(self): + # GH 27660 + a = np.arange(1, 5) + astr = a.astype(str) + bstr = np.arange(2, 6).astype(str) + df = DataFrame({"a": astr}) + result = df.replace(dict(zip(astr, bstr))) + expected = df.replace({"a": dict(zip(astr, bstr))}) + tm.assert_frame_equal(result, expected) + + def test_replace_swapping_bug(self): + df = DataFrame({"a": [True, False, True]}) + res = df.replace({"a": {True: "Y", False: "N"}}) + expect = DataFrame({"a": ["Y", "N", "Y"]}, dtype=object) + tm.assert_frame_equal(res, expect) + + df = DataFrame({"a": [0, 1, 0]}) + res = df.replace({"a": {0: "Y", 1: "N"}}) + expect = DataFrame({"a": ["Y", "N", "Y"]}, dtype=object) + tm.assert_frame_equal(res, expect) + + def test_replace_period(self): + d = { + "fname": { + "out_augmented_AUG_2011.json": pd.Period(year=2011, month=8, freq="M"), + "out_augmented_JAN_2011.json": pd.Period(year=2011, month=1, freq="M"), + "out_augmented_MAY_2012.json": pd.Period(year=2012, month=5, freq="M"), + "out_augmented_SUBSIDY_WEEK.json": pd.Period( + year=2011, month=4, freq="M" + ), + "out_augmented_AUG_2012.json": pd.Period(year=2012, month=8, freq="M"), + "out_augmented_MAY_2011.json": pd.Period(year=2011, month=5, freq="M"), + "out_augmented_SEP_2013.json": pd.Period(year=2013, month=9, freq="M"), + } + } + + df = DataFrame( + [ + "out_augmented_AUG_2012.json", + "out_augmented_SEP_2013.json", + "out_augmented_SUBSIDY_WEEK.json", + "out_augmented_MAY_2012.json", + "out_augmented_MAY_2011.json", + "out_augmented_AUG_2011.json", + "out_augmented_JAN_2011.json", + ], + columns=["fname"], + ) + assert set(df.fname.values) == set(d["fname"].keys()) + + expected = DataFrame({"fname": [d["fname"][k] for k in df.fname.values]}) + assert expected.dtypes.iloc[0] == "Period[M]" + msg = "Downcasting behavior in `replace` " + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.replace(d) + tm.assert_frame_equal(result, expected) + + def test_replace_datetime(self): + d = { + "fname": { + "out_augmented_AUG_2011.json": Timestamp("2011-08"), + "out_augmented_JAN_2011.json": Timestamp("2011-01"), + "out_augmented_MAY_2012.json": Timestamp("2012-05"), + "out_augmented_SUBSIDY_WEEK.json": Timestamp("2011-04"), + "out_augmented_AUG_2012.json": Timestamp("2012-08"), + "out_augmented_MAY_2011.json": Timestamp("2011-05"), + "out_augmented_SEP_2013.json": Timestamp("2013-09"), + } + } + + df = DataFrame( + [ + "out_augmented_AUG_2012.json", + "out_augmented_SEP_2013.json", + "out_augmented_SUBSIDY_WEEK.json", + "out_augmented_MAY_2012.json", + "out_augmented_MAY_2011.json", + "out_augmented_AUG_2011.json", + "out_augmented_JAN_2011.json", + ], + columns=["fname"], + ) + assert set(df.fname.values) == set(d["fname"].keys()) + expected = DataFrame({"fname": [d["fname"][k] for k in df.fname.values]}) + msg = "Downcasting behavior in `replace` " + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.replace(d) + tm.assert_frame_equal(result, expected) + + def test_replace_datetimetz(self): + # GH 11326 + # behaving poorly when presented with a datetime64[ns, tz] + df = DataFrame( + { + "A": date_range("20130101", periods=3, tz="US/Eastern"), + "B": [0, np.nan, 2], + } + ) + result = df.replace(np.nan, 1) + expected = DataFrame( + { + "A": date_range("20130101", periods=3, tz="US/Eastern"), + "B": Series([0, 1, 2], dtype="float64"), + } + ) + tm.assert_frame_equal(result, expected) + + result = df.fillna(1) + tm.assert_frame_equal(result, expected) + + result = df.replace(0, np.nan) + expected = DataFrame( + { + "A": date_range("20130101", periods=3, tz="US/Eastern"), + "B": [np.nan, np.nan, 2], + } + ) + tm.assert_frame_equal(result, expected) + + result = df.replace( + Timestamp("20130102", tz="US/Eastern"), + Timestamp("20130104", tz="US/Eastern"), + ) + expected = DataFrame( + { + "A": [ + Timestamp("20130101", tz="US/Eastern"), + Timestamp("20130104", tz="US/Eastern"), + Timestamp("20130103", tz="US/Eastern"), + ], + "B": [0, np.nan, 2], + } + ) + expected["A"] = expected["A"].dt.as_unit("ns") + tm.assert_frame_equal(result, expected) + + result = df.copy() + result.iloc[1, 0] = np.nan + result = result.replace({"A": pd.NaT}, Timestamp("20130104", tz="US/Eastern")) + tm.assert_frame_equal(result, expected) + + # pre-2.0 this would coerce to object with mismatched tzs + result = df.copy() + result.iloc[1, 0] = np.nan + result = result.replace({"A": pd.NaT}, Timestamp("20130104", tz="US/Pacific")) + expected = DataFrame( + { + "A": [ + Timestamp("20130101", tz="US/Eastern"), + Timestamp("20130104", tz="US/Pacific").tz_convert("US/Eastern"), + Timestamp("20130103", tz="US/Eastern"), + ], + "B": [0, np.nan, 2], + } + ) + expected["A"] = expected["A"].dt.as_unit("ns") + tm.assert_frame_equal(result, expected) + + result = df.copy() + result.iloc[1, 0] = np.nan + result = result.replace({"A": np.nan}, Timestamp("20130104")) + expected = DataFrame( + { + "A": [ + Timestamp("20130101", tz="US/Eastern"), + Timestamp("20130104"), + Timestamp("20130103", tz="US/Eastern"), + ], + "B": [0, np.nan, 2], + } + ) + tm.assert_frame_equal(result, expected) + + def test_replace_with_empty_dictlike(self, mix_abc): + # GH 15289 + df = DataFrame(mix_abc) + tm.assert_frame_equal(df, df.replace({})) + tm.assert_frame_equal(df, df.replace(Series([], dtype=object))) + + tm.assert_frame_equal(df, df.replace({"b": {}})) + tm.assert_frame_equal(df, df.replace(Series({"b": {}}))) + + @pytest.mark.parametrize( + "to_replace, method, expected", + [ + (0, "bfill", {"A": [1, 1, 2], "B": [5, np.nan, 7], "C": ["a", "b", "c"]}), + ( + np.nan, + "bfill", + {"A": [0, 1, 2], "B": [5.0, 7.0, 7.0], "C": ["a", "b", "c"]}, + ), + ("d", "ffill", {"A": [0, 1, 2], "B": [5, np.nan, 7], "C": ["a", "b", "c"]}), + ( + [0, 2], + "bfill", + {"A": [1, 1, 2], "B": [5, np.nan, 7], "C": ["a", "b", "c"]}, + ), + ( + [1, 2], + "pad", + {"A": [0, 0, 0], "B": [5, np.nan, 7], "C": ["a", "b", "c"]}, + ), + ( + (1, 2), + "bfill", + {"A": [0, 2, 2], "B": [5, np.nan, 7], "C": ["a", "b", "c"]}, + ), + ( + ["b", "c"], + "ffill", + {"A": [0, 1, 2], "B": [5, np.nan, 7], "C": ["a", "a", "a"]}, + ), + ], + ) + def test_replace_method(self, to_replace, method, expected): + # GH 19632 + df = DataFrame({"A": [0, 1, 2], "B": [5, np.nan, 7], "C": ["a", "b", "c"]}) + + msg = "The 'method' keyword in DataFrame.replace is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.replace(to_replace=to_replace, value=None, method=method) + expected = DataFrame(expected) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "replace_dict, final_data", + [({"a": 1, "b": 1}, [[3, 3], [2, 2]]), ({"a": 1, "b": 2}, [[3, 1], [2, 3]])], + ) + def test_categorical_replace_with_dict(self, replace_dict, final_data): + # GH 26988 + df = DataFrame([[1, 1], [2, 2]], columns=["a", "b"], dtype="category") + + final_data = np.array(final_data) + + a = pd.Categorical(final_data[:, 0], categories=[3, 2]) + + ex_cat = [3, 2] if replace_dict["b"] == 1 else [1, 3] + b = pd.Categorical(final_data[:, 1], categories=ex_cat) + + expected = DataFrame({"a": a, "b": b}) + msg2 = "with CategoricalDtype is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg2): + result = df.replace(replace_dict, 3) + tm.assert_frame_equal(result, expected) + msg = ( + r"Attributes of DataFrame.iloc\[:, 0\] \(column name=\"a\"\) are " + "different" + ) + with pytest.raises(AssertionError, match=msg): + # ensure non-inplace call does not affect original + tm.assert_frame_equal(df, expected) + with tm.assert_produces_warning(FutureWarning, match=msg2): + return_value = df.replace(replace_dict, 3, inplace=True) + assert return_value is None + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize( + "df, to_replace, exp", + [ + ( + {"col1": [1, 2, 3], "col2": [4, 5, 6]}, + {4: 5, 5: 6, 6: 7}, + {"col1": [1, 2, 3], "col2": [5, 6, 7]}, + ), + ( + {"col1": [1, 2, 3], "col2": ["4", "5", "6"]}, + {"4": "5", "5": "6", "6": "7"}, + {"col1": [1, 2, 3], "col2": ["5", "6", "7"]}, + ), + ], + ) + def test_replace_commutative(self, df, to_replace, exp): + # GH 16051 + # DataFrame.replace() overwrites when values are non-numeric + # also added to data frame whilst issue was for series + + df = DataFrame(df) + + expected = DataFrame(exp) + result = df.replace(to_replace) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "replacer", + [ + Timestamp("20170827"), + np.int8(1), + np.int16(1), + np.float32(1), + np.float64(1), + ], + ) + def test_replace_replacer_dtype(self, replacer): + # GH26632 + df = DataFrame(["a"], dtype=object) + msg = "Downcasting behavior in `replace` " + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.replace({"a": replacer, "b": replacer}) + expected = DataFrame([replacer]) + tm.assert_frame_equal(result, expected) + + def test_replace_after_convert_dtypes(self): + # GH31517 + df = DataFrame({"grp": [1, 2, 3, 4, 5]}, dtype="Int64") + result = df.replace(1, 10) + expected = DataFrame({"grp": [10, 2, 3, 4, 5]}, dtype="Int64") + tm.assert_frame_equal(result, expected) + + def test_replace_invalid_to_replace(self): + # GH 18634 + # API: replace() should raise an exception if invalid argument is given + df = DataFrame({"one": ["a", "b ", "c"], "two": ["d ", "e ", "f "]}) + msg = ( + r"Expecting 'to_replace' to be either a scalar, array-like, " + r"dict or None, got invalid type.*" + ) + msg2 = ( + "DataFrame.replace without 'value' and with non-dict-like " + "'to_replace' is deprecated" + ) + with pytest.raises(TypeError, match=msg): + with tm.assert_produces_warning(FutureWarning, match=msg2): + df.replace(lambda x: x.strip()) + + @pytest.mark.parametrize("dtype", ["float", "float64", "int64", "Int64", "boolean"]) + @pytest.mark.parametrize("value", [np.nan, pd.NA]) + def test_replace_no_replacement_dtypes(self, dtype, value): + # https://github.com/pandas-dev/pandas/issues/32988 + df = DataFrame(np.eye(2), dtype=dtype) + result = df.replace(to_replace=[None, -np.inf, np.inf], value=value) + tm.assert_frame_equal(result, df) + + @pytest.mark.parametrize("replacement", [np.nan, 5]) + def test_replace_with_duplicate_columns(self, replacement): + # GH 24798 + result = DataFrame({"A": [1, 2, 3], "A1": [4, 5, 6], "B": [7, 8, 9]}) + result.columns = list("AAB") + + expected = DataFrame( + {"A": [1, 2, 3], "A1": [4, 5, 6], "B": [replacement, 8, 9]} + ) + expected.columns = list("AAB") + + result["B"] = result["B"].replace(7, replacement) + + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("value", [pd.Period("2020-01"), pd.Interval(0, 5)]) + def test_replace_ea_ignore_float(self, frame_or_series, value): + # GH#34871 + obj = DataFrame({"Per": [value] * 3}) + obj = tm.get_obj(obj, frame_or_series) + + expected = obj.copy() + result = obj.replace(1.0, 0.0) + tm.assert_equal(expected, result) + + def test_replace_value_category_type(self): + """ + Test for #23305: to ensure category dtypes are maintained + after replace with direct values + """ + + # create input data + input_dict = { + "col1": [1, 2, 3, 4], + "col2": ["a", "b", "c", "d"], + "col3": [1.5, 2.5, 3.5, 4.5], + "col4": ["cat1", "cat2", "cat3", "cat4"], + "col5": ["obj1", "obj2", "obj3", "obj4"], + } + # explicitly cast columns as category and order them + input_df = DataFrame(data=input_dict).astype( + {"col2": "category", "col4": "category"} + ) + input_df["col2"] = input_df["col2"].cat.reorder_categories( + ["a", "b", "c", "d"], ordered=True + ) + input_df["col4"] = input_df["col4"].cat.reorder_categories( + ["cat1", "cat2", "cat3", "cat4"], ordered=True + ) + + # create expected dataframe + expected_dict = { + "col1": [1, 2, 3, 4], + "col2": ["a", "b", "c", "z"], + "col3": [1.5, 2.5, 3.5, 4.5], + "col4": ["cat1", "catX", "cat3", "cat4"], + "col5": ["obj9", "obj2", "obj3", "obj4"], + } + # explicitly cast columns as category and order them + expected = DataFrame(data=expected_dict).astype( + {"col2": "category", "col4": "category"} + ) + expected["col2"] = expected["col2"].cat.reorder_categories( + ["a", "b", "c", "z"], ordered=True + ) + expected["col4"] = expected["col4"].cat.reorder_categories( + ["cat1", "catX", "cat3", "cat4"], ordered=True + ) + + # replace values in input dataframe + msg = ( + r"The behavior of Series\.replace \(and DataFrame.replace\) " + "with CategoricalDtype" + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + input_df = input_df.replace("d", "z") + input_df = input_df.replace("obj1", "obj9") + result = input_df.replace("cat2", "catX") + + result = result.astype({"col1": "int64", "col3": "float64", "col5": "str"}) + tm.assert_frame_equal(result, expected) + + def test_replace_dict_category_type(self): + """ + Test to ensure category dtypes are maintained + after replace with dict values + """ + # GH#35268, GH#44940 + + # create input dataframe + input_dict = {"col1": ["a"], "col2": ["obj1"], "col3": ["cat1"]} + # explicitly cast columns as category + input_df = DataFrame(data=input_dict).astype( + {"col1": "category", "col2": "category", "col3": "category"} + ) + + # create expected dataframe + expected_dict = {"col1": ["z"], "col2": ["obj9"], "col3": ["catX"]} + # explicitly cast columns as category + expected = DataFrame(data=expected_dict).astype( + {"col1": "category", "col2": "category", "col3": "category"} + ) + + # replace values in input dataframe using a dict + msg = ( + r"The behavior of Series\.replace \(and DataFrame.replace\) " + "with CategoricalDtype" + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + result = input_df.replace({"a": "z", "obj1": "obj9", "cat1": "catX"}) + + tm.assert_frame_equal(result, expected) + + def test_replace_with_compiled_regex(self): + # https://github.com/pandas-dev/pandas/issues/35680 + df = DataFrame(["a", "b", "c"]) + regex = re.compile("^a$") + result = df.replace({regex: "z"}, regex=True) + expected = DataFrame(["z", "b", "c"]) + tm.assert_frame_equal(result, expected) + + def test_replace_intervals(self): + # https://github.com/pandas-dev/pandas/issues/35931 + df = DataFrame({"a": [pd.Interval(0, 1), pd.Interval(0, 1)]}) + result = df.replace({"a": {pd.Interval(0, 1): "x"}}) + expected = DataFrame({"a": ["x", "x"]}, dtype=object) + tm.assert_frame_equal(result, expected) + + def test_replace_unicode(self): + # GH: 16784 + columns_values_map = {"positive": {"正面": 1, "中立": 1, "负面": 0}} + df1 = DataFrame({"positive": np.ones(3)}) + result = df1.replace(columns_values_map) + expected = DataFrame({"positive": np.ones(3)}) + tm.assert_frame_equal(result, expected) + + def test_replace_bytes(self, frame_or_series): + # GH#38900 + obj = frame_or_series(["o"]).astype("|S") + expected = obj.copy() + obj = obj.replace({None: np.nan}) + tm.assert_equal(obj, expected) + + @pytest.mark.parametrize( + "data, to_replace, value, expected", + [ + ([1], [1.0], [0], [0]), + ([1], [1], [0], [0]), + ([1.0], [1.0], [0], [0.0]), + ([1.0], [1], [0], [0.0]), + ], + ) + @pytest.mark.parametrize("box", [list, tuple, np.array]) + def test_replace_list_with_mixed_type( + self, data, to_replace, value, expected, box, frame_or_series + ): + # GH#40371 + obj = frame_or_series(data) + expected = frame_or_series(expected) + result = obj.replace(box(to_replace), value) + tm.assert_equal(result, expected) + + @pytest.mark.parametrize("val", [2, np.nan, 2.0]) + def test_replace_value_none_dtype_numeric(self, val): + # GH#48231 + df = DataFrame({"a": [1, val]}) + result = df.replace(val, None) + expected = DataFrame({"a": [1, None]}, dtype=object) + tm.assert_frame_equal(result, expected) + + df = DataFrame({"a": [1, val]}) + result = df.replace({val: None}) + tm.assert_frame_equal(result, expected) + + def test_replace_with_nil_na(self): + # GH 32075 + ser = DataFrame({"a": ["nil", pd.NA]}) + expected = DataFrame({"a": ["anything else", pd.NA]}, index=[0, 1]) + result = ser.replace("nil", "anything else") + tm.assert_frame_equal(expected, result) + + +class TestDataFrameReplaceRegex: + @pytest.mark.parametrize( + "data", + [ + {"a": list("ab.."), "b": list("efgh")}, + {"a": list("ab.."), "b": list(range(4))}, + ], + ) + @pytest.mark.parametrize( + "to_replace,value", [(r"\s*\.\s*", np.nan), (r"\s*(\.)\s*", r"\1\1\1")] + ) + @pytest.mark.parametrize("compile_regex", [True, False]) + @pytest.mark.parametrize("regex_kwarg", [True, False]) + @pytest.mark.parametrize("inplace", [True, False]) + def test_regex_replace_scalar( + self, data, to_replace, value, compile_regex, regex_kwarg, inplace + ): + df = DataFrame(data) + expected = df.copy() + + if compile_regex: + to_replace = re.compile(to_replace) + + if regex_kwarg: + regex = to_replace + to_replace = None + else: + regex = True + + result = df.replace(to_replace, value, inplace=inplace, regex=regex) + + if inplace: + assert result is None + result = df + + if value is np.nan: + expected_replace_val = np.nan + else: + expected_replace_val = "..." + + expected.loc[expected["a"] == ".", "a"] = expected_replace_val + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("regex", [False, True]) + def test_replace_regex_dtype_frame(self, regex): + # GH-48644 + df1 = DataFrame({"A": ["0"], "B": ["0"]}) + expected_df1 = DataFrame({"A": [1], "B": [1]}) + msg = "Downcasting behavior in `replace`" + with tm.assert_produces_warning(FutureWarning, match=msg): + result_df1 = df1.replace(to_replace="0", value=1, regex=regex) + tm.assert_frame_equal(result_df1, expected_df1) + + df2 = DataFrame({"A": ["0"], "B": ["1"]}) + expected_df2 = DataFrame({"A": [1], "B": ["1"]}) + with tm.assert_produces_warning(FutureWarning, match=msg): + result_df2 = df2.replace(to_replace="0", value=1, regex=regex) + tm.assert_frame_equal(result_df2, expected_df2) + + def test_replace_with_value_also_being_replaced(self): + # GH46306 + df = DataFrame({"A": [0, 1, 2], "B": [1, 0, 2]}) + result = df.replace({0: 1, 1: np.nan}) + expected = DataFrame({"A": [1, np.nan, 2], "B": [np.nan, 1, 2]}) + tm.assert_frame_equal(result, expected) + + def test_replace_categorical_no_replacement(self): + # GH#46672 + df = DataFrame( + { + "a": ["one", "two", None, "three"], + "b": ["one", None, "two", "three"], + }, + dtype="category", + ) + expected = df.copy() + + result = df.replace(to_replace=[".", "def"], value=["_", None]) + tm.assert_frame_equal(result, expected) + + def test_replace_object_splitting(self, using_infer_string): + # GH#53977 + df = DataFrame({"a": ["a"], "b": "b"}) + if using_infer_string: + assert len(df._mgr.blocks) == 2 + else: + assert len(df._mgr.blocks) == 1 + df.replace(to_replace=r"^\s*$", value="", inplace=True, regex=True) + if using_infer_string: + assert len(df._mgr.blocks) == 2 + else: + assert len(df._mgr.blocks) == 1 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_reset_index.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_reset_index.py new file mode 100644 index 0000000000000000000000000000000000000000..e762c8ebdcd6072f90512c80447a5081e891b1ae --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_reset_index.py @@ -0,0 +1,813 @@ +from datetime import datetime +from itertools import product + +import numpy as np +import pytest + +from pandas.core.dtypes.common import ( + is_float_dtype, + is_integer_dtype, +) + +import pandas as pd +from pandas import ( + Categorical, + CategoricalIndex, + DataFrame, + Index, + Interval, + IntervalIndex, + MultiIndex, + RangeIndex, + Series, + Timestamp, + cut, + date_range, +) +import pandas._testing as tm + + +@pytest.fixture() +def multiindex_df(): + levels = [["A", ""], ["B", "b"]] + return DataFrame([[0, 2], [1, 3]], columns=MultiIndex.from_tuples(levels)) + + +class TestResetIndex: + def test_reset_index_empty_rangeindex(self): + # GH#45230 + df = DataFrame( + columns=["brand"], dtype=np.int64, index=RangeIndex(0, 0, 1, name="foo") + ) + + df2 = df.set_index([df.index, "brand"]) + + result = df2.reset_index([1], drop=True) + tm.assert_frame_equal(result, df[[]], check_index_type=True) + + def test_set_reset(self): + idx = Index([2**63, 2**63 + 5, 2**63 + 10], name="foo") + + # set/reset + df = DataFrame({"A": [0, 1, 2]}, index=idx) + result = df.reset_index() + assert result["foo"].dtype == np.dtype("uint64") + + df = result.set_index("foo") + tm.assert_index_equal(df.index, idx) + + def test_set_index_reset_index_dt64tz(self): + idx = Index(date_range("20130101", periods=3, tz="US/Eastern"), name="foo") + + # set/reset + df = DataFrame({"A": [0, 1, 2]}, index=idx) + result = df.reset_index() + assert result["foo"].dtype == "datetime64[ns, US/Eastern]" + + df = result.set_index("foo") + tm.assert_index_equal(df.index, idx) + + def test_reset_index_tz(self, tz_aware_fixture): + # GH 3950 + # reset_index with single level + tz = tz_aware_fixture + idx = date_range("1/1/2011", periods=5, freq="D", tz=tz, name="idx") + df = DataFrame({"a": range(5), "b": ["A", "B", "C", "D", "E"]}, index=idx) + + expected = DataFrame( + { + "idx": idx, + "a": range(5), + "b": ["A", "B", "C", "D", "E"], + }, + columns=["idx", "a", "b"], + ) + result = df.reset_index() + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("tz", ["US/Eastern", "dateutil/US/Eastern"]) + def test_frame_reset_index_tzaware_index(self, tz): + dr = date_range("2012-06-02", periods=10, tz=tz) + df = DataFrame(np.random.default_rng(2).standard_normal(len(dr)), dr) + roundtripped = df.reset_index().set_index("index") + xp = df.index.tz + rs = roundtripped.index.tz + assert xp == rs + + def test_reset_index_with_intervals(self): + idx = IntervalIndex.from_breaks(np.arange(11), name="x") + original = DataFrame({"x": idx, "y": np.arange(10)})[["x", "y"]] + + result = original.set_index("x") + expected = DataFrame({"y": np.arange(10)}, index=idx) + tm.assert_frame_equal(result, expected) + + result2 = result.reset_index() + tm.assert_frame_equal(result2, original) + + def test_reset_index(self, float_frame): + stacked = float_frame.stack(future_stack=True)[::2] + stacked = DataFrame({"foo": stacked, "bar": stacked}) + + names = ["first", "second"] + stacked.index.names = names + deleveled = stacked.reset_index() + for i, (lev, level_codes) in enumerate( + zip(stacked.index.levels, stacked.index.codes) + ): + values = lev.take(level_codes) + name = names[i] + tm.assert_index_equal(values, Index(deleveled[name])) + + stacked.index.names = [None, None] + deleveled2 = stacked.reset_index() + tm.assert_series_equal( + deleveled["first"], deleveled2["level_0"], check_names=False + ) + tm.assert_series_equal( + deleveled["second"], deleveled2["level_1"], check_names=False + ) + + # default name assigned + rdf = float_frame.reset_index() + exp = Series(float_frame.index.values, name="index") + tm.assert_series_equal(rdf["index"], exp) + + # default name assigned, corner case + df = float_frame.copy() + df["index"] = "foo" + rdf = df.reset_index() + exp = Series(float_frame.index.values, name="level_0") + tm.assert_series_equal(rdf["level_0"], exp) + + # but this is ok + float_frame.index.name = "index" + deleveled = float_frame.reset_index() + tm.assert_series_equal(deleveled["index"], Series(float_frame.index)) + tm.assert_index_equal(deleveled.index, Index(range(len(deleveled))), exact=True) + + # preserve column names + float_frame.columns.name = "columns" + reset = float_frame.reset_index() + assert reset.columns.name == "columns" + + # only remove certain columns + df = float_frame.reset_index().set_index(["index", "A", "B"]) + rs = df.reset_index(["A", "B"]) + + tm.assert_frame_equal(rs, float_frame) + + rs = df.reset_index(["index", "A", "B"]) + tm.assert_frame_equal(rs, float_frame.reset_index()) + + rs = df.reset_index(["index", "A", "B"]) + tm.assert_frame_equal(rs, float_frame.reset_index()) + + rs = df.reset_index("A") + xp = float_frame.reset_index().set_index(["index", "B"]) + tm.assert_frame_equal(rs, xp) + + # test resetting in place + df = float_frame.copy() + reset = float_frame.reset_index() + return_value = df.reset_index(inplace=True) + assert return_value is None + tm.assert_frame_equal(df, reset) + + df = float_frame.reset_index().set_index(["index", "A", "B"]) + rs = df.reset_index("A", drop=True) + xp = float_frame.copy() + del xp["A"] + xp = xp.set_index(["B"], append=True) + tm.assert_frame_equal(rs, xp) + + def test_reset_index_name(self): + df = DataFrame( + [[1, 2, 3, 4], [5, 6, 7, 8]], + columns=["A", "B", "C", "D"], + index=Index(range(2), name="x"), + ) + assert df.reset_index().index.name is None + assert df.reset_index(drop=True).index.name is None + return_value = df.reset_index(inplace=True) + assert return_value is None + assert df.index.name is None + + @pytest.mark.parametrize("levels", [["A", "B"], [0, 1]]) + def test_reset_index_level(self, levels): + df = DataFrame([[1, 2, 3, 4], [5, 6, 7, 8]], columns=["A", "B", "C", "D"]) + + # With MultiIndex + result = df.set_index(["A", "B"]).reset_index(level=levels[0]) + tm.assert_frame_equal(result, df.set_index("B")) + + result = df.set_index(["A", "B"]).reset_index(level=levels[:1]) + tm.assert_frame_equal(result, df.set_index("B")) + + result = df.set_index(["A", "B"]).reset_index(level=levels) + tm.assert_frame_equal(result, df) + + result = df.set_index(["A", "B"]).reset_index(level=levels, drop=True) + tm.assert_frame_equal(result, df[["C", "D"]]) + + # With single-level Index (GH 16263) + result = df.set_index("A").reset_index(level=levels[0]) + tm.assert_frame_equal(result, df) + + result = df.set_index("A").reset_index(level=levels[:1]) + tm.assert_frame_equal(result, df) + + result = df.set_index(["A"]).reset_index(level=levels[0], drop=True) + tm.assert_frame_equal(result, df[["B", "C", "D"]]) + + @pytest.mark.parametrize("idx_lev", [["A", "B"], ["A"]]) + def test_reset_index_level_missing(self, idx_lev): + # Missing levels - for both MultiIndex and single-level Index: + df = DataFrame([[1, 2, 3, 4], [5, 6, 7, 8]], columns=["A", "B", "C", "D"]) + + with pytest.raises(KeyError, match=r"(L|l)evel \(?E\)?"): + df.set_index(idx_lev).reset_index(level=["A", "E"]) + with pytest.raises(IndexError, match="Too many levels"): + df.set_index(idx_lev).reset_index(level=[0, 1, 2]) + + def test_reset_index_right_dtype(self): + time = np.arange(0.0, 10, np.sqrt(2) / 2) + s1 = Series( + (9.81 * time**2) / 2, index=Index(time, name="time"), name="speed" + ) + df = DataFrame(s1) + + reset = s1.reset_index() + assert reset["time"].dtype == np.float64 + + reset = df.reset_index() + assert reset["time"].dtype == np.float64 + + def test_reset_index_multiindex_col(self): + vals = np.random.default_rng(2).standard_normal((3, 3)).astype(object) + idx = ["x", "y", "z"] + full = np.hstack(([[x] for x in idx], vals)) + df = DataFrame( + vals, + Index(idx, name="a"), + columns=[["b", "b", "c"], ["mean", "median", "mean"]], + ) + rs = df.reset_index() + xp = DataFrame( + full, columns=[["a", "b", "b", "c"], ["", "mean", "median", "mean"]] + ) + tm.assert_frame_equal(rs, xp) + + rs = df.reset_index(col_fill=None) + xp = DataFrame( + full, columns=[["a", "b", "b", "c"], ["a", "mean", "median", "mean"]] + ) + tm.assert_frame_equal(rs, xp) + + rs = df.reset_index(col_level=1, col_fill="blah") + xp = DataFrame( + full, columns=[["blah", "b", "b", "c"], ["a", "mean", "median", "mean"]] + ) + tm.assert_frame_equal(rs, xp) + + df = DataFrame( + vals, + MultiIndex.from_arrays([[0, 1, 2], ["x", "y", "z"]], names=["d", "a"]), + columns=[["b", "b", "c"], ["mean", "median", "mean"]], + ) + rs = df.reset_index("a") + xp = DataFrame( + full, + Index([0, 1, 2], name="d"), + columns=[["a", "b", "b", "c"], ["", "mean", "median", "mean"]], + ) + tm.assert_frame_equal(rs, xp) + + rs = df.reset_index("a", col_fill=None) + xp = DataFrame( + full, + Index(range(3), name="d"), + columns=[["a", "b", "b", "c"], ["a", "mean", "median", "mean"]], + ) + tm.assert_frame_equal(rs, xp) + + rs = df.reset_index("a", col_fill="blah", col_level=1) + xp = DataFrame( + full, + Index(range(3), name="d"), + columns=[["blah", "b", "b", "c"], ["a", "mean", "median", "mean"]], + ) + tm.assert_frame_equal(rs, xp) + + def test_reset_index_multiindex_nan(self): + # GH#6322, testing reset_index on MultiIndexes + # when we have a nan or all nan + df = DataFrame( + { + "A": ["a", "b", "c"], + "B": [0, 1, np.nan], + "C": np.random.default_rng(2).random(3), + } + ) + rs = df.set_index(["A", "B"]).reset_index() + tm.assert_frame_equal(rs, df) + + df = DataFrame( + { + "A": [np.nan, "b", "c"], + "B": [0, 1, 2], + "C": np.random.default_rng(2).random(3), + } + ) + rs = df.set_index(["A", "B"]).reset_index() + tm.assert_frame_equal(rs, df) + + df = DataFrame({"A": ["a", "b", "c"], "B": [0, 1, 2], "C": [np.nan, 1.1, 2.2]}) + rs = df.set_index(["A", "B"]).reset_index() + tm.assert_frame_equal(rs, df) + + df = DataFrame( + { + "A": ["a", "b", "c"], + "B": [np.nan, np.nan, np.nan], + "C": np.random.default_rng(2).random(3), + } + ) + rs = df.set_index(["A", "B"]).reset_index() + tm.assert_frame_equal(rs, df) + + @pytest.mark.parametrize( + "name", + [ + None, + "foo", + 2, + 3.0, + pd.Timedelta(6), + Timestamp("2012-12-30", tz="UTC"), + "2012-12-31", + ], + ) + def test_reset_index_with_datetimeindex_cols(self, name): + # GH#5818 + df = DataFrame( + [[1, 2], [3, 4]], + columns=date_range("1/1/2013", "1/2/2013"), + index=["A", "B"], + ) + df.index.name = name + + result = df.reset_index() + + item = name if name is not None else "index" + columns = Index([item, datetime(2013, 1, 1), datetime(2013, 1, 2)]) + if isinstance(item, str) and item == "2012-12-31": + columns = columns.astype("datetime64[ns]") + else: + assert columns.dtype == object + + expected = DataFrame( + [["A", 1, 2], ["B", 3, 4]], + columns=columns, + ) + tm.assert_frame_equal(result, expected) + + def test_reset_index_range(self): + # GH#12071 + df = DataFrame([[0, 0], [1, 1]], columns=["A", "B"], index=RangeIndex(stop=2)) + result = df.reset_index() + assert isinstance(result.index, RangeIndex) + expected = DataFrame( + [[0, 0, 0], [1, 1, 1]], + columns=["index", "A", "B"], + index=RangeIndex(stop=2), + ) + tm.assert_frame_equal(result, expected) + + def test_reset_index_multiindex_columns(self, multiindex_df): + result = multiindex_df[["B"]].rename_axis("A").reset_index() + tm.assert_frame_equal(result, multiindex_df) + + # GH#16120: already existing column + msg = r"cannot insert \('A', ''\), already exists" + with pytest.raises(ValueError, match=msg): + multiindex_df.rename_axis("A").reset_index() + + # GH#16164: multiindex (tuple) full key + result = multiindex_df.set_index([("A", "")]).reset_index() + tm.assert_frame_equal(result, multiindex_df) + + # with additional (unnamed) index level + idx_col = DataFrame( + [[0], [1]], columns=MultiIndex.from_tuples([("level_0", "")]) + ) + expected = pd.concat([idx_col, multiindex_df[[("B", "b"), ("A", "")]]], axis=1) + result = multiindex_df.set_index([("B", "b")], append=True).reset_index() + tm.assert_frame_equal(result, expected) + + # with index name which is a too long tuple... + msg = "Item must have length equal to number of levels." + with pytest.raises(ValueError, match=msg): + multiindex_df.rename_axis([("C", "c", "i")]).reset_index() + + # or too short... + levels = [["A", "a", ""], ["B", "b", "i"]] + df2 = DataFrame([[0, 2], [1, 3]], columns=MultiIndex.from_tuples(levels)) + idx_col = DataFrame( + [[0], [1]], columns=MultiIndex.from_tuples([("C", "c", "ii")]) + ) + expected = pd.concat([idx_col, df2], axis=1) + result = df2.rename_axis([("C", "c")]).reset_index(col_fill="ii") + tm.assert_frame_equal(result, expected) + + # ... which is incompatible with col_fill=None + with pytest.raises( + ValueError, + match=( + "col_fill=None is incompatible with " + r"incomplete column name \('C', 'c'\)" + ), + ): + df2.rename_axis([("C", "c")]).reset_index(col_fill=None) + + # with col_level != 0 + result = df2.rename_axis([("c", "ii")]).reset_index(col_level=1, col_fill="C") + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("flag", [False, True]) + @pytest.mark.parametrize("allow_duplicates", [False, True]) + def test_reset_index_duplicate_columns_allow( + self, multiindex_df, flag, allow_duplicates + ): + # GH#44755 reset_index with duplicate column labels + df = multiindex_df.rename_axis("A") + df = df.set_flags(allows_duplicate_labels=flag) + + if flag and allow_duplicates: + result = df.reset_index(allow_duplicates=allow_duplicates) + levels = [["A", ""], ["A", ""], ["B", "b"]] + expected = DataFrame( + [[0, 0, 2], [1, 1, 3]], columns=MultiIndex.from_tuples(levels) + ) + tm.assert_frame_equal(result, expected) + else: + if not flag and allow_duplicates: + msg = ( + "Cannot specify 'allow_duplicates=True' when " + "'self.flags.allows_duplicate_labels' is False" + ) + else: + msg = r"cannot insert \('A', ''\), already exists" + with pytest.raises(ValueError, match=msg): + df.reset_index(allow_duplicates=allow_duplicates) + + @pytest.mark.parametrize("flag", [False, True]) + def test_reset_index_duplicate_columns_default(self, multiindex_df, flag): + df = multiindex_df.rename_axis("A") + df = df.set_flags(allows_duplicate_labels=flag) + + msg = r"cannot insert \('A', ''\), already exists" + with pytest.raises(ValueError, match=msg): + df.reset_index() + + @pytest.mark.parametrize("allow_duplicates", ["bad value"]) + def test_reset_index_allow_duplicates_check(self, multiindex_df, allow_duplicates): + with pytest.raises(ValueError, match="expected type bool"): + multiindex_df.reset_index(allow_duplicates=allow_duplicates) + + def test_reset_index_datetime(self, tz_naive_fixture): + # GH#3950 + tz = tz_naive_fixture + idx1 = date_range("1/1/2011", periods=5, freq="D", tz=tz, name="idx1") + idx2 = Index(range(5), name="idx2", dtype="int64") + idx = MultiIndex.from_arrays([idx1, idx2]) + df = DataFrame( + {"a": np.arange(5, dtype="int64"), "b": ["A", "B", "C", "D", "E"]}, + index=idx, + ) + + expected = DataFrame( + { + "idx1": idx1, + "idx2": np.arange(5, dtype="int64"), + "a": np.arange(5, dtype="int64"), + "b": ["A", "B", "C", "D", "E"], + }, + columns=["idx1", "idx2", "a", "b"], + ) + + tm.assert_frame_equal(df.reset_index(), expected) + + def test_reset_index_datetime2(self, tz_naive_fixture): + tz = tz_naive_fixture + idx1 = date_range("1/1/2011", periods=5, freq="D", tz=tz, name="idx1") + idx2 = Index(range(5), name="idx2", dtype="int64") + idx3 = date_range( + "1/1/2012", periods=5, freq="MS", tz="Europe/Paris", name="idx3" + ) + idx = MultiIndex.from_arrays([idx1, idx2, idx3]) + df = DataFrame( + {"a": np.arange(5, dtype="int64"), "b": ["A", "B", "C", "D", "E"]}, + index=idx, + ) + + expected = DataFrame( + { + "idx1": idx1, + "idx2": np.arange(5, dtype="int64"), + "idx3": idx3, + "a": np.arange(5, dtype="int64"), + "b": ["A", "B", "C", "D", "E"], + }, + columns=["idx1", "idx2", "idx3", "a", "b"], + ) + result = df.reset_index() + tm.assert_frame_equal(result, expected) + + def test_reset_index_datetime3(self, tz_naive_fixture): + # GH#7793 + tz = tz_naive_fixture + dti = date_range("20130101", periods=3, tz=tz) + idx = MultiIndex.from_product([["a", "b"], dti]) + df = DataFrame( + np.arange(6, dtype="int64").reshape(6, 1), columns=["a"], index=idx + ) + + expected = DataFrame( + { + "level_0": "a a a b b b".split(), + "level_1": dti.append(dti), + "a": np.arange(6, dtype="int64"), + }, + columns=["level_0", "level_1", "a"], + ) + result = df.reset_index() + tm.assert_frame_equal(result, expected) + + def test_reset_index_period(self): + # GH#7746 + idx = MultiIndex.from_product( + [pd.period_range("20130101", periods=3, freq="M"), list("abc")], + names=["month", "feature"], + ) + + df = DataFrame( + np.arange(9, dtype="int64").reshape(-1, 1), index=idx, columns=["a"] + ) + expected = DataFrame( + { + "month": ( + [pd.Period("2013-01", freq="M")] * 3 + + [pd.Period("2013-02", freq="M")] * 3 + + [pd.Period("2013-03", freq="M")] * 3 + ), + "feature": ["a", "b", "c"] * 3, + "a": np.arange(9, dtype="int64"), + }, + columns=["month", "feature", "a"], + ) + result = df.reset_index() + tm.assert_frame_equal(result, expected) + + def test_reset_index_delevel_infer_dtype(self): + tuples = list(product(["foo", "bar"], [10, 20], [1.0, 1.1])) + index = MultiIndex.from_tuples(tuples, names=["prm0", "prm1", "prm2"]) + df = DataFrame( + np.random.default_rng(2).standard_normal((8, 3)), + columns=["A", "B", "C"], + index=index, + ) + deleveled = df.reset_index() + assert is_integer_dtype(deleveled["prm1"]) + assert is_float_dtype(deleveled["prm2"]) + + def test_reset_index_with_drop( + self, multiindex_year_month_day_dataframe_random_data + ): + ymd = multiindex_year_month_day_dataframe_random_data + + deleveled = ymd.reset_index(drop=True) + assert len(deleveled.columns) == len(ymd.columns) + assert deleveled.index.name == ymd.index.name + + @pytest.mark.parametrize( + "ix_data, exp_data", + [ + ( + [(pd.NaT, 1), (pd.NaT, 2)], + {"a": [pd.NaT, pd.NaT], "b": [1, 2], "x": [11, 12]}, + ), + ( + [(pd.NaT, 1), (Timestamp("2020-01-01"), 2)], + {"a": [pd.NaT, Timestamp("2020-01-01")], "b": [1, 2], "x": [11, 12]}, + ), + ( + [(pd.NaT, 1), (pd.Timedelta(123, "d"), 2)], + {"a": [pd.NaT, pd.Timedelta(123, "d")], "b": [1, 2], "x": [11, 12]}, + ), + ], + ) + def test_reset_index_nat_multiindex(self, ix_data, exp_data): + # GH#36541: that reset_index() does not raise ValueError + ix = MultiIndex.from_tuples(ix_data, names=["a", "b"]) + result = DataFrame({"x": [11, 12]}, index=ix) + result = result.reset_index() + + expected = DataFrame(exp_data) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "codes", ([[0, 0, 1, 1], [0, 1, 0, 1]], [[0, 0, -1, 1], [0, 1, 0, 1]]) + ) + def test_rest_index_multiindex_categorical_with_missing_values(self, codes): + # GH#24206 + + index = MultiIndex( + [CategoricalIndex(["A", "B"]), CategoricalIndex(["a", "b"])], codes + ) + data = {"col": range(len(index))} + df = DataFrame(data=data, index=index) + + expected = DataFrame( + { + "level_0": Categorical.from_codes(codes[0], categories=["A", "B"]), + "level_1": Categorical.from_codes(codes[1], categories=["a", "b"]), + "col": range(4), + } + ) + + res = df.reset_index() + tm.assert_frame_equal(res, expected) + + # roundtrip + res = expected.set_index(["level_0", "level_1"]).reset_index() + tm.assert_frame_equal(res, expected) + + +@pytest.mark.parametrize( + "array, dtype", + [ + (["a", "b"], object), + ( + pd.period_range("12-1-2000", periods=2, freq="Q-DEC"), + pd.PeriodDtype(freq="Q-DEC"), + ), + ], +) +def test_reset_index_dtypes_on_empty_frame_with_multiindex( + array, dtype, using_infer_string +): + # GH 19602 - Preserve dtype on empty DataFrame with MultiIndex + idx = MultiIndex.from_product([[0, 1], [0.5, 1.0], array]) + result = DataFrame(index=idx)[:0].reset_index().dtypes + if using_infer_string and dtype == object: + dtype = pd.StringDtype(na_value=np.nan) + expected = Series({"level_0": np.int64, "level_1": np.float64, "level_2": dtype}) + tm.assert_series_equal(result, expected) + + +def test_reset_index_empty_frame_with_datetime64_multiindex(): + # https://github.com/pandas-dev/pandas/issues/35606 + dti = pd.DatetimeIndex(["2020-07-20 00:00:00"], dtype="M8[ns]") + idx = MultiIndex.from_product([dti, [3, 4]], names=["a", "b"])[:0] + df = DataFrame(index=idx, columns=["c", "d"]) + result = df.reset_index() + expected = DataFrame( + columns=list("abcd"), index=RangeIndex(start=0, stop=0, step=1) + ) + expected["a"] = expected["a"].astype("datetime64[ns]") + expected["b"] = expected["b"].astype("int64") + tm.assert_frame_equal(result, expected) + + +def test_reset_index_empty_frame_with_datetime64_multiindex_from_groupby( + using_infer_string, +): + # https://github.com/pandas-dev/pandas/issues/35657 + dti = pd.DatetimeIndex(["2020-01-01"], dtype="M8[ns]") + df = DataFrame({"c1": [10.0], "c2": ["a"], "c3": dti}) + df = df.head(0).groupby(["c2", "c3"])[["c1"]].sum() + result = df.reset_index() + expected = DataFrame( + columns=["c2", "c3", "c1"], index=RangeIndex(start=0, stop=0, step=1) + ) + expected["c3"] = expected["c3"].astype("datetime64[ns]") + expected["c1"] = expected["c1"].astype("float64") + if using_infer_string: + expected["c2"] = expected["c2"].astype("str") + tm.assert_frame_equal(result, expected) + + +def test_reset_index_multiindex_nat(): + # GH 11479 + idx = range(3) + tstamp = date_range("2015-07-01", freq="D", periods=3) + df = DataFrame({"id": idx, "tstamp": tstamp, "a": list("abc")}) + df.loc[2, "tstamp"] = pd.NaT + result = df.set_index(["id", "tstamp"]).reset_index("id") + exp_dti = pd.DatetimeIndex( + ["2015-07-01", "2015-07-02", "NaT"], dtype="M8[ns]", name="tstamp" + ) + expected = DataFrame( + {"id": range(3), "a": list("abc")}, + index=exp_dti, + ) + tm.assert_frame_equal(result, expected) + + +def test_reset_index_interval_columns_object_cast(): + # GH 19136 + df = DataFrame( + np.eye(2), index=Index([1, 2], name="Year"), columns=cut([1, 2], [0, 1, 2]) + ) + result = df.reset_index() + expected = DataFrame( + [[1, 1.0, 0.0], [2, 0.0, 1.0]], + columns=Index(["Year", Interval(0, 1), Interval(1, 2)]), + ) + tm.assert_frame_equal(result, expected) + + +def test_reset_index_rename(float_frame): + # GH 6878 + result = float_frame.reset_index(names="new_name") + expected = Series(float_frame.index.values, name="new_name") + tm.assert_series_equal(result["new_name"], expected) + + result = float_frame.reset_index(names=123) + expected = Series(float_frame.index.values, name=123) + tm.assert_series_equal(result[123], expected) + + +def test_reset_index_rename_multiindex(float_frame): + # GH 6878 + stacked_df = float_frame.stack(future_stack=True)[::2] + stacked_df = DataFrame({"foo": stacked_df, "bar": stacked_df}) + + names = ["first", "second"] + stacked_df.index.names = names + + result = stacked_df.reset_index() + expected = stacked_df.reset_index(names=["new_first", "new_second"]) + tm.assert_series_equal(result["first"], expected["new_first"], check_names=False) + tm.assert_series_equal(result["second"], expected["new_second"], check_names=False) + + +def test_errorreset_index_rename(float_frame): + # GH 6878 + stacked_df = float_frame.stack(future_stack=True)[::2] + stacked_df = DataFrame({"first": stacked_df, "second": stacked_df}) + + with pytest.raises( + ValueError, match="Index names must be str or 1-dimensional list" + ): + stacked_df.reset_index(names={"first": "new_first", "second": "new_second"}) + + with pytest.raises(IndexError, match="list index out of range"): + stacked_df.reset_index(names=["new_first"]) + + +def test_reset_index_false_index_name(): + result_series = Series(data=range(5, 10), index=range(5)) + result_series.index.name = False + result_series.reset_index() + expected_series = Series(range(5, 10), RangeIndex(range(5), name=False)) + tm.assert_series_equal(result_series, expected_series) + + # GH 38147 + result_frame = DataFrame(data=range(5, 10), index=range(5)) + result_frame.index.name = False + result_frame.reset_index() + expected_frame = DataFrame(range(5, 10), RangeIndex(range(5), name=False)) + tm.assert_frame_equal(result_frame, expected_frame) + + +@pytest.mark.parametrize("columns", [None, Index([])]) +def test_reset_index_with_empty_frame(columns): + # Currently empty DataFrame has RangeIndex or object dtype Index, but when + # resetting the index we still want to end up with the default string dtype + # https://github.com/pandas-dev/pandas/issues/60338 + + index = Index([], name="foo") + df = DataFrame(index=index, columns=columns) + result = df.reset_index() + expected = DataFrame(columns=["foo"]) + tm.assert_frame_equal(result, expected) + + index = Index([1, 2, 3], name="foo") + df = DataFrame(index=index, columns=columns) + result = df.reset_index() + expected = DataFrame({"foo": [1, 2, 3]}) + tm.assert_frame_equal(result, expected) + + index = MultiIndex.from_tuples([], names=["foo", "bar"]) + df = DataFrame(index=index, columns=columns) + result = df.reset_index() + expected = DataFrame(columns=["foo", "bar"]) + tm.assert_frame_equal(result, expected) + + index = MultiIndex.from_tuples([(1, 2), (2, 3)], names=["foo", "bar"]) + df = DataFrame(index=index, columns=columns) + result = df.reset_index() + expected = DataFrame({"foo": [1, 2], "bar": [2, 3]}) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_round.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_round.py new file mode 100644 index 0000000000000000000000000000000000000000..a96df27b48d7d8dc0b2f26cc25f0dca16ea3b462 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_round.py @@ -0,0 +1,225 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + DataFrame, + Series, + date_range, +) +import pandas._testing as tm + + +class TestDataFrameRound: + def test_round(self): + # GH#2665 + + # Test that rounding an empty DataFrame does nothing + df = DataFrame() + tm.assert_frame_equal(df, df.round()) + + # Here's the test frame we'll be working with + df = DataFrame({"col1": [1.123, 2.123, 3.123], "col2": [1.234, 2.234, 3.234]}) + + # Default round to integer (i.e. decimals=0) + expected_rounded = DataFrame({"col1": [1.0, 2.0, 3.0], "col2": [1.0, 2.0, 3.0]}) + tm.assert_frame_equal(df.round(), expected_rounded) + + # Round with an integer + decimals = 2 + expected_rounded = DataFrame( + {"col1": [1.12, 2.12, 3.12], "col2": [1.23, 2.23, 3.23]} + ) + tm.assert_frame_equal(df.round(decimals), expected_rounded) + + # This should also work with np.round (since np.round dispatches to + # df.round) + tm.assert_frame_equal(np.round(df, decimals), expected_rounded) + + # Round with a list + round_list = [1, 2] + msg = "decimals must be an integer, a dict-like or a Series" + with pytest.raises(TypeError, match=msg): + df.round(round_list) + + # Round with a dictionary + expected_rounded = DataFrame( + {"col1": [1.1, 2.1, 3.1], "col2": [1.23, 2.23, 3.23]} + ) + round_dict = {"col1": 1, "col2": 2} + tm.assert_frame_equal(df.round(round_dict), expected_rounded) + + # Incomplete dict + expected_partially_rounded = DataFrame( + {"col1": [1.123, 2.123, 3.123], "col2": [1.2, 2.2, 3.2]} + ) + partial_round_dict = {"col2": 1} + tm.assert_frame_equal(df.round(partial_round_dict), expected_partially_rounded) + + # Dict with unknown elements + wrong_round_dict = {"col3": 2, "col2": 1} + tm.assert_frame_equal(df.round(wrong_round_dict), expected_partially_rounded) + + # float input to `decimals` + non_int_round_dict = {"col1": 1, "col2": 0.5} + msg = "Values in decimals must be integers" + with pytest.raises(TypeError, match=msg): + df.round(non_int_round_dict) + + # String input + non_int_round_dict = {"col1": 1, "col2": "foo"} + with pytest.raises(TypeError, match=msg): + df.round(non_int_round_dict) + + non_int_round_Series = Series(non_int_round_dict) + with pytest.raises(TypeError, match=msg): + df.round(non_int_round_Series) + + # List input + non_int_round_dict = {"col1": 1, "col2": [1, 2]} + with pytest.raises(TypeError, match=msg): + df.round(non_int_round_dict) + + non_int_round_Series = Series(non_int_round_dict) + with pytest.raises(TypeError, match=msg): + df.round(non_int_round_Series) + + # Non integer Series inputs + non_int_round_Series = Series(non_int_round_dict) + with pytest.raises(TypeError, match=msg): + df.round(non_int_round_Series) + + non_int_round_Series = Series(non_int_round_dict) + with pytest.raises(TypeError, match=msg): + df.round(non_int_round_Series) + + # Negative numbers + negative_round_dict = {"col1": -1, "col2": -2} + big_df = df * 100 + expected_neg_rounded = DataFrame( + {"col1": [110.0, 210, 310], "col2": [100.0, 200, 300]} + ) + tm.assert_frame_equal(big_df.round(negative_round_dict), expected_neg_rounded) + + # nan in Series round + nan_round_Series = Series({"col1": np.nan, "col2": 1}) + + with pytest.raises(TypeError, match=msg): + df.round(nan_round_Series) + + # Make sure this doesn't break existing Series.round + tm.assert_series_equal(df["col1"].round(1), expected_rounded["col1"]) + + # named columns + # GH#11986 + decimals = 2 + expected_rounded = DataFrame( + {"col1": [1.12, 2.12, 3.12], "col2": [1.23, 2.23, 3.23]} + ) + df.columns.name = "cols" + expected_rounded.columns.name = "cols" + tm.assert_frame_equal(df.round(decimals), expected_rounded) + + # interaction of named columns & series + tm.assert_series_equal(df["col1"].round(decimals), expected_rounded["col1"]) + tm.assert_series_equal(df.round(decimals)["col1"], expected_rounded["col1"]) + + def test_round_numpy(self): + # GH#12600 + df = DataFrame([[1.53, 1.36], [0.06, 7.01]]) + out = np.round(df, decimals=0) + expected = DataFrame([[2.0, 1.0], [0.0, 7.0]]) + tm.assert_frame_equal(out, expected) + + msg = "the 'out' parameter is not supported" + with pytest.raises(ValueError, match=msg): + np.round(df, decimals=0, out=df) + + def test_round_numpy_with_nan(self): + # See GH#14197 + df = Series([1.53, np.nan, 0.06]).to_frame() + with tm.assert_produces_warning(None): + result = df.round() + expected = Series([2.0, np.nan, 0.0]).to_frame() + tm.assert_frame_equal(result, expected) + + def test_round_mixed_type(self): + # GH#11885 + df = DataFrame( + { + "col1": [1.1, 2.2, 3.3, 4.4], + "col2": ["1", "a", "c", "f"], + "col3": date_range("20111111", periods=4), + } + ) + round_0 = DataFrame( + { + "col1": [1.0, 2.0, 3.0, 4.0], + "col2": ["1", "a", "c", "f"], + "col3": date_range("20111111", periods=4), + } + ) + tm.assert_frame_equal(df.round(), round_0) + tm.assert_frame_equal(df.round(1), df) + tm.assert_frame_equal(df.round({"col1": 1}), df) + tm.assert_frame_equal(df.round({"col1": 0}), round_0) + tm.assert_frame_equal(df.round({"col1": 0, "col2": 1}), round_0) + tm.assert_frame_equal(df.round({"col3": 1}), df) + + def test_round_with_duplicate_columns(self): + # GH#11611 + + df = DataFrame( + np.random.default_rng(2).random([3, 3]), + columns=["A", "B", "C"], + index=["first", "second", "third"], + ) + + dfs = pd.concat((df, df), axis=1) + rounded = dfs.round() + tm.assert_index_equal(rounded.index, dfs.index) + + decimals = Series([1, 0, 2], index=["A", "B", "A"]) + msg = "Index of decimals must be unique" + with pytest.raises(ValueError, match=msg): + df.round(decimals) + + def test_round_builtin(self): + # GH#11763 + # Here's the test frame we'll be working with + df = DataFrame({"col1": [1.123, 2.123, 3.123], "col2": [1.234, 2.234, 3.234]}) + + # Default round to integer (i.e. decimals=0) + expected_rounded = DataFrame({"col1": [1.0, 2.0, 3.0], "col2": [1.0, 2.0, 3.0]}) + tm.assert_frame_equal(round(df), expected_rounded) + + def test_round_nonunique_categorical(self): + # See GH#21809 + idx = pd.CategoricalIndex(["low"] * 3 + ["hi"] * 3) + df = DataFrame(np.random.default_rng(2).random((6, 3)), columns=list("abc")) + + expected = df.round(3) + expected.index = idx + + df_categorical = df.copy().set_index(idx) + assert df_categorical.shape == (6, 3) + result = df_categorical.round(3) + assert result.shape == (6, 3) + + tm.assert_frame_equal(result, expected) + + def test_round_interval_category_columns(self): + # GH#30063 + columns = pd.CategoricalIndex(pd.interval_range(0, 2)) + df = DataFrame([[0.66, 1.1], [0.3, 0.25]], columns=columns) + + result = df.round() + expected = DataFrame([[1.0, 1.0], [0.0, 0.0]], columns=columns) + tm.assert_frame_equal(result, expected) + + def test_round_empty_not_input(self): + # GH#51032 + df = DataFrame() + result = df.round() + tm.assert_frame_equal(df, result) + assert df is not result diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_sample.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_sample.py new file mode 100644 index 0000000000000000000000000000000000000000..6b3459fbdc0359c4d234dd9d1f3c2bbfbcb5c260 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_sample.py @@ -0,0 +1,372 @@ +import numpy as np +import pytest + +from pandas import ( + DataFrame, + Index, + Series, +) +import pandas._testing as tm +import pandas.core.common as com + + +class TestSample: + @pytest.fixture + def obj(self, frame_or_series): + if frame_or_series is Series: + arr = np.random.default_rng(2).standard_normal(10) + else: + arr = np.random.default_rng(2).standard_normal((10, 10)) + return frame_or_series(arr, dtype=None) + + @pytest.mark.parametrize("test", list(range(10))) + def test_sample(self, test, obj): + # Fixes issue: 2419 + # Check behavior of random_state argument + # Check for stability when receives seed or random state -- run 10 + # times. + + seed = np.random.default_rng(2).integers(0, 100) + tm.assert_equal( + obj.sample(n=4, random_state=seed), obj.sample(n=4, random_state=seed) + ) + + tm.assert_equal( + obj.sample(frac=0.7, random_state=seed), + obj.sample(frac=0.7, random_state=seed), + ) + + tm.assert_equal( + obj.sample(n=4, random_state=np.random.default_rng(test)), + obj.sample(n=4, random_state=np.random.default_rng(test)), + ) + + tm.assert_equal( + obj.sample(frac=0.7, random_state=np.random.default_rng(test)), + obj.sample(frac=0.7, random_state=np.random.default_rng(test)), + ) + + tm.assert_equal( + obj.sample( + frac=2, + replace=True, + random_state=np.random.default_rng(test), + ), + obj.sample( + frac=2, + replace=True, + random_state=np.random.default_rng(test), + ), + ) + + os1, os2 = [], [] + for _ in range(2): + os1.append(obj.sample(n=4, random_state=test)) + os2.append(obj.sample(frac=0.7, random_state=test)) + tm.assert_equal(*os1) + tm.assert_equal(*os2) + + def test_sample_lengths(self, obj): + # Check lengths are right + assert len(obj.sample(n=4) == 4) + assert len(obj.sample(frac=0.34) == 3) + assert len(obj.sample(frac=0.36) == 4) + + def test_sample_invalid_random_state(self, obj): + # Check for error when random_state argument invalid. + msg = ( + "random_state must be an integer, array-like, a BitGenerator, Generator, " + "a numpy RandomState, or None" + ) + with pytest.raises(ValueError, match=msg): + obj.sample(random_state="a_string") + + def test_sample_wont_accept_n_and_frac(self, obj): + # Giving both frac and N throws error + msg = "Please enter a value for `frac` OR `n`, not both" + with pytest.raises(ValueError, match=msg): + obj.sample(n=3, frac=0.3) + + def test_sample_requires_positive_n_frac(self, obj): + with pytest.raises( + ValueError, + match="A negative number of rows requested. Please provide `n` >= 0", + ): + obj.sample(n=-3) + with pytest.raises( + ValueError, + match="A negative number of rows requested. Please provide `frac` >= 0", + ): + obj.sample(frac=-0.3) + + def test_sample_requires_integer_n(self, obj): + # Make sure float values of `n` give error + with pytest.raises(ValueError, match="Only integers accepted as `n` values"): + obj.sample(n=3.2) + + def test_sample_invalid_weight_lengths(self, obj): + # Weight length must be right + msg = "Weights and axis to be sampled must be of same length" + with pytest.raises(ValueError, match=msg): + obj.sample(n=3, weights=[0, 1]) + + with pytest.raises(ValueError, match=msg): + bad_weights = [0.5] * 11 + obj.sample(n=3, weights=bad_weights) + + with pytest.raises(ValueError, match="Fewer non-zero entries in p than size"): + bad_weight_series = Series([0, 0, 0.2]) + obj.sample(n=4, weights=bad_weight_series) + + def test_sample_negative_weights(self, obj): + # Check won't accept negative weights + bad_weights = [-0.1] * 10 + msg = "weight vector many not include negative values" + with pytest.raises(ValueError, match=msg): + obj.sample(n=3, weights=bad_weights) + + def test_sample_inf_weights(self, obj): + # Check inf and -inf throw errors: + + weights_with_inf = [0.1] * 10 + weights_with_inf[0] = np.inf + msg = "weight vector may not include `inf` values" + with pytest.raises(ValueError, match=msg): + obj.sample(n=3, weights=weights_with_inf) + + weights_with_ninf = [0.1] * 10 + weights_with_ninf[0] = -np.inf + with pytest.raises(ValueError, match=msg): + obj.sample(n=3, weights=weights_with_ninf) + + def test_sample_zero_weights(self, obj): + # All zeros raises errors + + zero_weights = [0] * 10 + with pytest.raises(ValueError, match="Invalid weights: weights sum to zero"): + obj.sample(n=3, weights=zero_weights) + + def test_sample_missing_weights(self, obj): + # All missing weights + + nan_weights = [np.nan] * 10 + with pytest.raises(ValueError, match="Invalid weights: weights sum to zero"): + obj.sample(n=3, weights=nan_weights) + + def test_sample_none_weights(self, obj): + # Check None are also replaced by zeros. + weights_with_None = [None] * 10 + weights_with_None[5] = 0.5 + tm.assert_equal( + obj.sample(n=1, axis=0, weights=weights_with_None), obj.iloc[5:6] + ) + + @pytest.mark.parametrize( + "func_str,arg", + [ + ("np.array", [2, 3, 1, 0]), + ("np.random.MT19937", 3), + ("np.random.PCG64", 11), + ], + ) + def test_sample_random_state(self, func_str, arg, frame_or_series): + # GH#32503 + obj = DataFrame({"col1": range(10, 20), "col2": range(20, 30)}) + obj = tm.get_obj(obj, frame_or_series) + result = obj.sample(n=3, random_state=eval(func_str)(arg)) + expected = obj.sample(n=3, random_state=com.random_state(eval(func_str)(arg))) + tm.assert_equal(result, expected) + + def test_sample_generator(self, frame_or_series): + # GH#38100 + obj = frame_or_series(np.arange(100)) + rng = np.random.default_rng(2) + + # Consecutive calls should advance the seed + result1 = obj.sample(n=50, random_state=rng) + result2 = obj.sample(n=50, random_state=rng) + assert not (result1.index.values == result2.index.values).all() + + # Matching generator initialization must give same result + # Consecutive calls should advance the seed + result1 = obj.sample(n=50, random_state=np.random.default_rng(11)) + result2 = obj.sample(n=50, random_state=np.random.default_rng(11)) + tm.assert_equal(result1, result2) + + def test_sample_upsampling_without_replacement(self, frame_or_series): + # GH#27451 + + obj = DataFrame({"A": list("abc")}) + obj = tm.get_obj(obj, frame_or_series) + + msg = ( + "Replace has to be set to `True` when " + "upsampling the population `frac` > 1." + ) + with pytest.raises(ValueError, match=msg): + obj.sample(frac=2, replace=False) + + +class TestSampleDataFrame: + # Tests which are relevant only for DataFrame, so these are + # as fully parametrized as they can get. + + def test_sample(self): + # GH#2419 + # additional specific object based tests + + # A few dataframe test with degenerate weights. + easy_weight_list = [0] * 10 + easy_weight_list[5] = 1 + + df = DataFrame( + { + "col1": range(10, 20), + "col2": range(20, 30), + "colString": ["a"] * 10, + "easyweights": easy_weight_list, + } + ) + sample1 = df.sample(n=1, weights="easyweights") + tm.assert_frame_equal(sample1, df.iloc[5:6]) + + # Ensure proper error if string given as weight for Series or + # DataFrame with axis = 1. + ser = Series(range(10)) + msg = "Strings cannot be passed as weights when sampling from a Series." + with pytest.raises(ValueError, match=msg): + ser.sample(n=3, weights="weight_column") + + msg = ( + "Strings can only be passed to weights when sampling from rows on a " + "DataFrame" + ) + with pytest.raises(ValueError, match=msg): + df.sample(n=1, weights="weight_column", axis=1) + + # Check weighting key error + with pytest.raises( + KeyError, match="'String passed to weights not a valid column'" + ): + df.sample(n=3, weights="not_a_real_column_name") + + # Check that re-normalizes weights that don't sum to one. + weights_less_than_1 = [0] * 10 + weights_less_than_1[0] = 0.5 + tm.assert_frame_equal(df.sample(n=1, weights=weights_less_than_1), df.iloc[:1]) + + ### + # Test axis argument + ### + + # Test axis argument + df = DataFrame({"col1": range(10), "col2": ["a"] * 10}) + second_column_weight = [0, 1] + tm.assert_frame_equal( + df.sample(n=1, axis=1, weights=second_column_weight), df[["col2"]] + ) + + # Different axis arg types + tm.assert_frame_equal( + df.sample(n=1, axis="columns", weights=second_column_weight), df[["col2"]] + ) + + weight = [0] * 10 + weight[5] = 0.5 + tm.assert_frame_equal(df.sample(n=1, axis="rows", weights=weight), df.iloc[5:6]) + tm.assert_frame_equal( + df.sample(n=1, axis="index", weights=weight), df.iloc[5:6] + ) + + # Check out of range axis values + msg = "No axis named 2 for object type DataFrame" + with pytest.raises(ValueError, match=msg): + df.sample(n=1, axis=2) + + msg = "No axis named not_a_name for object type DataFrame" + with pytest.raises(ValueError, match=msg): + df.sample(n=1, axis="not_a_name") + + ser = Series(range(10)) + with pytest.raises(ValueError, match="No axis named 1 for object type Series"): + ser.sample(n=1, axis=1) + + # Test weight length compared to correct axis + msg = "Weights and axis to be sampled must be of same length" + with pytest.raises(ValueError, match=msg): + df.sample(n=1, axis=1, weights=[0.5] * 10) + + def test_sample_axis1(self): + # Check weights with axis = 1 + easy_weight_list = [0] * 3 + easy_weight_list[2] = 1 + + df = DataFrame( + {"col1": range(10, 20), "col2": range(20, 30), "colString": ["a"] * 10} + ) + sample1 = df.sample(n=1, axis=1, weights=easy_weight_list) + tm.assert_frame_equal(sample1, df[["colString"]]) + + # Test default axes + tm.assert_frame_equal( + df.sample(n=3, random_state=42), df.sample(n=3, axis=0, random_state=42) + ) + + def test_sample_aligns_weights_with_frame(self): + # Test that function aligns weights with frame + df = DataFrame({"col1": [5, 6, 7], "col2": ["a", "b", "c"]}, index=[9, 5, 3]) + ser = Series([1, 0, 0], index=[3, 5, 9]) + tm.assert_frame_equal(df.loc[[3]], df.sample(1, weights=ser)) + + # Weights have index values to be dropped because not in + # sampled DataFrame + ser2 = Series([0.001, 0, 10000], index=[3, 5, 10]) + tm.assert_frame_equal(df.loc[[3]], df.sample(1, weights=ser2)) + + # Weights have empty values to be filed with zeros + ser3 = Series([0.01, 0], index=[3, 5]) + tm.assert_frame_equal(df.loc[[3]], df.sample(1, weights=ser3)) + + # No overlap in weight and sampled DataFrame indices + ser4 = Series([1, 0], index=[1, 2]) + + with pytest.raises(ValueError, match="Invalid weights: weights sum to zero"): + df.sample(1, weights=ser4) + + def test_sample_is_copy(self): + # GH#27357, GH#30784: ensure the result of sample is an actual copy and + # doesn't track the parent dataframe / doesn't give SettingWithCopy warnings + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 3)), columns=["a", "b", "c"] + ) + df2 = df.sample(3) + + with tm.assert_produces_warning(None): + df2["d"] = 1 + + def test_sample_does_not_modify_weights(self): + # GH-42843 + result = np.array([np.nan, 1, np.nan]) + expected = result.copy() + ser = Series([1, 2, 3]) + + # Test numpy array weights won't be modified in place + ser.sample(weights=result) + tm.assert_numpy_array_equal(result, expected) + + # Test DataFrame column won't be modified in place + df = DataFrame({"values": [1, 1, 1], "weights": [1, np.nan, np.nan]}) + expected = df["weights"].copy() + + df.sample(frac=1.0, replace=True, weights="weights") + result = df["weights"] + tm.assert_series_equal(result, expected) + + def test_sample_ignore_index(self): + # GH 38581 + df = DataFrame( + {"col1": range(10, 20), "col2": range(20, 30), "colString": ["a"] * 10} + ) + result = df.sample(3, ignore_index=True) + expected_index = Index(range(3)) + tm.assert_index_equal(result.index, expected_index, exact=True) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_select_dtypes.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_select_dtypes.py new file mode 100644 index 0000000000000000000000000000000000000000..1ba6b9c437726ffbd10391ebe7585482afa6f00c --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_select_dtypes.py @@ -0,0 +1,510 @@ +import numpy as np +import pytest + +from pandas.core.dtypes.dtypes import ExtensionDtype + +import pandas as pd +from pandas import ( + DataFrame, + Timestamp, +) +import pandas._testing as tm +from pandas.core.arrays import ExtensionArray + + +class DummyDtype(ExtensionDtype): + type = int + + def __init__(self, numeric) -> None: + self._numeric = numeric + + @property + def name(self): + return "Dummy" + + @property + def _is_numeric(self): + return self._numeric + + +class DummyArray(ExtensionArray): + def __init__(self, data, dtype) -> None: + self.data = data + self._dtype = dtype + + def __array__(self, dtype=None, copy=None): + return self.data + + @property + def dtype(self): + return self._dtype + + def __len__(self) -> int: + return len(self.data) + + def __getitem__(self, item): + pass + + def copy(self): + return self + + +class TestSelectDtypes: + def test_select_dtypes_include_using_list_like(self, using_infer_string): + df = DataFrame( + { + "a": list("abc"), + "b": list(range(1, 4)), + "c": np.arange(3, 6).astype("u1"), + "d": np.arange(4.0, 7.0, dtype="float64"), + "e": [True, False, True], + "f": pd.Categorical(list("abc")), + "g": pd.date_range("20130101", periods=3), + "h": pd.date_range("20130101", periods=3, tz="US/Eastern"), + "i": pd.date_range("20130101", periods=3, tz="CET"), + "j": pd.period_range("2013-01", periods=3, freq="M"), + "k": pd.timedelta_range("1 day", periods=3), + } + ) + + ri = df.select_dtypes(include=[np.number]) + ei = df[["b", "c", "d", "k"]] + tm.assert_frame_equal(ri, ei) + + ri = df.select_dtypes(include=[np.number], exclude=["timedelta"]) + ei = df[["b", "c", "d"]] + tm.assert_frame_equal(ri, ei) + + ri = df.select_dtypes(include=[np.number, "category"], exclude=["timedelta"]) + ei = df[["b", "c", "d", "f"]] + tm.assert_frame_equal(ri, ei) + + ri = df.select_dtypes(include=["datetime"]) + ei = df[["g"]] + tm.assert_frame_equal(ri, ei) + + ri = df.select_dtypes(include=["datetime64"]) + ei = df[["g"]] + tm.assert_frame_equal(ri, ei) + + ri = df.select_dtypes(include=["datetimetz"]) + ei = df[["h", "i"]] + tm.assert_frame_equal(ri, ei) + + with pytest.raises(NotImplementedError, match=r"^$"): + df.select_dtypes(include=["period"]) + + if using_infer_string: + ri = df.select_dtypes(include=["str"]) + ei = df[["a"]] + tm.assert_frame_equal(ri, ei) + + ri = df.select_dtypes(include=[str]) + tm.assert_frame_equal(ri, ei) + + ri = df.select_dtypes(include=["object"]) + ei = df[["a"]] + tm.assert_frame_equal(ri, ei) + + def test_select_dtypes_exclude_using_list_like(self): + df = DataFrame( + { + "a": list("abc"), + "b": list(range(1, 4)), + "c": np.arange(3, 6).astype("u1"), + "d": np.arange(4.0, 7.0, dtype="float64"), + "e": [True, False, True], + } + ) + re = df.select_dtypes(exclude=[np.number]) + ee = df[["a", "e"]] + tm.assert_frame_equal(re, ee) + + def test_select_dtypes_exclude_include_using_list_like(self): + df = DataFrame( + { + "a": list("abc"), + "b": list(range(1, 4)), + "c": np.arange(3, 6, dtype="u1"), + "d": np.arange(4.0, 7.0, dtype="float64"), + "e": [True, False, True], + "f": pd.date_range("now", periods=3).values, + } + ) + exclude = (np.datetime64,) + include = np.bool_, "integer" + r = df.select_dtypes(include=include, exclude=exclude) + e = df[["b", "c", "e"]] + tm.assert_frame_equal(r, e) + + exclude = ("datetime",) + include = "bool", "int64", "int32" + r = df.select_dtypes(include=include, exclude=exclude) + e = df[["b", "e"]] + tm.assert_frame_equal(r, e) + + @pytest.mark.parametrize( + "include", [(np.bool_, "int"), (np.bool_, "integer"), ("bool", int)] + ) + def test_select_dtypes_exclude_include_int(self, include): + # Fix select_dtypes(include='int') for Windows, FYI #36596 + df = DataFrame( + { + "a": list("abc"), + "b": list(range(1, 4)), + "c": np.arange(3, 6, dtype="int32"), + "d": np.arange(4.0, 7.0, dtype="float64"), + "e": [True, False, True], + "f": pd.date_range("now", periods=3).values, + } + ) + exclude = (np.datetime64,) + result = df.select_dtypes(include=include, exclude=exclude) + expected = df[["b", "c", "e"]] + tm.assert_frame_equal(result, expected) + + def test_select_dtypes_include_using_scalars(self, using_infer_string): + df = DataFrame( + { + "a": list("abc"), + "b": list(range(1, 4)), + "c": np.arange(3, 6).astype("u1"), + "d": np.arange(4.0, 7.0, dtype="float64"), + "e": [True, False, True], + "f": pd.Categorical(list("abc")), + "g": pd.date_range("20130101", periods=3), + "h": pd.date_range("20130101", periods=3, tz="US/Eastern"), + "i": pd.date_range("20130101", periods=3, tz="CET"), + "j": pd.period_range("2013-01", periods=3, freq="M"), + "k": pd.timedelta_range("1 day", periods=3), + } + ) + + ri = df.select_dtypes(include=np.number) + ei = df[["b", "c", "d", "k"]] + tm.assert_frame_equal(ri, ei) + + ri = df.select_dtypes(include="datetime") + ei = df[["g"]] + tm.assert_frame_equal(ri, ei) + + ri = df.select_dtypes(include="datetime64") + ei = df[["g"]] + tm.assert_frame_equal(ri, ei) + + ri = df.select_dtypes(include="category") + ei = df[["f"]] + tm.assert_frame_equal(ri, ei) + + with pytest.raises(NotImplementedError, match=r"^$"): + df.select_dtypes(include="period") + + if using_infer_string: + ri = df.select_dtypes(include="str") + ei = df[["a"]] + tm.assert_frame_equal(ri, ei) + + def test_select_dtypes_exclude_using_scalars(self): + df = DataFrame( + { + "a": list("abc"), + "b": list(range(1, 4)), + "c": np.arange(3, 6).astype("u1"), + "d": np.arange(4.0, 7.0, dtype="float64"), + "e": [True, False, True], + "f": pd.Categorical(list("abc")), + "g": pd.date_range("20130101", periods=3), + "h": pd.date_range("20130101", periods=3, tz="US/Eastern"), + "i": pd.date_range("20130101", periods=3, tz="CET"), + "j": pd.period_range("2013-01", periods=3, freq="M"), + "k": pd.timedelta_range("1 day", periods=3), + } + ) + + ri = df.select_dtypes(exclude=np.number) + ei = df[["a", "e", "f", "g", "h", "i", "j"]] + tm.assert_frame_equal(ri, ei) + + ri = df.select_dtypes(exclude="category") + ei = df[["a", "b", "c", "d", "e", "g", "h", "i", "j", "k"]] + tm.assert_frame_equal(ri, ei) + + with pytest.raises(NotImplementedError, match=r"^$"): + df.select_dtypes(exclude="period") + + def test_select_dtypes_include_exclude_using_scalars(self): + df = DataFrame( + { + "a": list("abc"), + "b": list(range(1, 4)), + "c": np.arange(3, 6).astype("u1"), + "d": np.arange(4.0, 7.0, dtype="float64"), + "e": [True, False, True], + "f": pd.Categorical(list("abc")), + "g": pd.date_range("20130101", periods=3), + "h": pd.date_range("20130101", periods=3, tz="US/Eastern"), + "i": pd.date_range("20130101", periods=3, tz="CET"), + "j": pd.period_range("2013-01", periods=3, freq="M"), + "k": pd.timedelta_range("1 day", periods=3), + } + ) + + ri = df.select_dtypes(include=np.number, exclude="floating") + ei = df[["b", "c", "k"]] + tm.assert_frame_equal(ri, ei) + + def test_select_dtypes_include_exclude_mixed_scalars_lists(self): + df = DataFrame( + { + "a": list("abc"), + "b": list(range(1, 4)), + "c": np.arange(3, 6).astype("u1"), + "d": np.arange(4.0, 7.0, dtype="float64"), + "e": [True, False, True], + "f": pd.Categorical(list("abc")), + "g": pd.date_range("20130101", periods=3), + "h": pd.date_range("20130101", periods=3, tz="US/Eastern"), + "i": pd.date_range("20130101", periods=3, tz="CET"), + "j": pd.period_range("2013-01", periods=3, freq="M"), + "k": pd.timedelta_range("1 day", periods=3), + } + ) + + ri = df.select_dtypes(include=np.number, exclude=["floating", "timedelta"]) + ei = df[["b", "c"]] + tm.assert_frame_equal(ri, ei) + + ri = df.select_dtypes(include=[np.number, "category"], exclude="floating") + ei = df[["b", "c", "f", "k"]] + tm.assert_frame_equal(ri, ei) + + def test_select_dtypes_duplicate_columns(self): + # GH20839 + df = DataFrame( + { + "a": ["a", "b", "c"], + "b": [1, 2, 3], + "c": np.arange(3, 6).astype("u1"), + "d": np.arange(4.0, 7.0, dtype="float64"), + "e": [True, False, True], + "f": pd.date_range("now", periods=3).values, + } + ) + df.columns = ["a", "a", "b", "b", "b", "c"] + + expected = DataFrame( + {"a": list(range(1, 4)), "b": np.arange(3, 6).astype("u1")} + ) + + result = df.select_dtypes(include=[np.number], exclude=["floating"]) + tm.assert_frame_equal(result, expected) + + def test_select_dtypes_not_an_attr_but_still_valid_dtype(self, using_infer_string): + df = DataFrame( + { + "a": list("abc"), + "b": list(range(1, 4)), + "c": np.arange(3, 6).astype("u1"), + "d": np.arange(4.0, 7.0, dtype="float64"), + "e": [True, False, True], + "f": pd.date_range("now", periods=3).values, + } + ) + df["g"] = df.f.diff() + assert not hasattr(np, "u8") + r = df.select_dtypes(include=["i8", "O"], exclude=["timedelta"]) + # if using_infer_string: + # TODO warn + e = df[["a", "b"]] + tm.assert_frame_equal(r, e) + + r = df.select_dtypes(include=["i8", "O", "timedelta64[ns]"]) + # if using_infer_string: + # TODO warn + e = df[["a", "b", "g"]] + tm.assert_frame_equal(r, e) + + def test_select_dtypes_empty(self): + df = DataFrame({"a": list("abc"), "b": list(range(1, 4))}) + msg = "at least one of include or exclude must be nonempty" + with pytest.raises(ValueError, match=msg): + df.select_dtypes() + + def test_select_dtypes_bad_datetime64(self): + df = DataFrame( + { + "a": list("abc"), + "b": list(range(1, 4)), + "c": np.arange(3, 6).astype("u1"), + "d": np.arange(4.0, 7.0, dtype="float64"), + "e": [True, False, True], + "f": pd.date_range("now", periods=3).values, + } + ) + with pytest.raises(ValueError, match=".+ is too specific"): + df.select_dtypes(include=["datetime64[D]"]) + + with pytest.raises(ValueError, match=".+ is too specific"): + df.select_dtypes(exclude=["datetime64[as]"]) + + def test_select_dtypes_datetime_with_tz(self): + df2 = DataFrame( + { + "A": Timestamp("20130102", tz="US/Eastern"), + "B": Timestamp("20130603", tz="CET"), + }, + index=range(5), + ) + df3 = pd.concat([df2.A.to_frame(), df2.B.to_frame()], axis=1) + result = df3.select_dtypes(include=["datetime64[ns]"]) + expected = df3.reindex(columns=[]) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("dtype", [str, "str", np.bytes_, "S1", np.str_, "U1"]) + @pytest.mark.parametrize("arg", ["include", "exclude"]) + def test_select_dtypes_str_raises(self, dtype, arg, using_infer_string): + if using_infer_string and (dtype == "str" or dtype is str): + # this is tested below + pytest.skip("Selecting string columns works with future strings") + df = DataFrame( + { + "a": list("abc"), + "g": list("abc"), + "b": list(range(1, 4)), + "c": np.arange(3, 6).astype("u1"), + "d": np.arange(4.0, 7.0, dtype="float64"), + "e": [True, False, True], + "f": pd.date_range("now", periods=3).values, + } + ) + msg = "string dtypes are not allowed" + kwargs = {arg: [dtype]} + + with pytest.raises(TypeError, match=msg): + df.select_dtypes(**kwargs) + + def test_select_dtypes_bad_arg_raises(self): + df = DataFrame( + { + "a": list("abc"), + "g": list("abc"), + "b": list(range(1, 4)), + "c": np.arange(3, 6).astype("u1"), + "d": np.arange(4.0, 7.0, dtype="float64"), + "e": [True, False, True], + "f": pd.date_range("now", periods=3).values, + } + ) + + msg = "data type.*not understood" + with pytest.raises(TypeError, match=msg): + df.select_dtypes(["blargy, blarg, blarg"]) + + def test_select_dtypes_typecodes(self): + # GH 11990 + df = DataFrame(np.random.default_rng(2).random((5, 3))) + FLOAT_TYPES = list(np.typecodes["AllFloat"]) + tm.assert_frame_equal(df.select_dtypes(FLOAT_TYPES), df) + + @pytest.mark.parametrize( + "arr,expected", + ( + (np.array([1, 2], dtype=np.int32), True), + (pd.array([1, 2], dtype="Int32"), True), + (DummyArray([1, 2], dtype=DummyDtype(numeric=True)), True), + (DummyArray([1, 2], dtype=DummyDtype(numeric=False)), False), + ), + ) + def test_select_dtypes_numeric(self, arr, expected): + # GH 35340 + + df = DataFrame(arr) + is_selected = df.select_dtypes(np.number).shape == df.shape + assert is_selected == expected + + def test_select_dtypes_numeric_nullable_string(self, nullable_string_dtype): + arr = pd.array(["a", "b"], dtype=nullable_string_dtype) + df = DataFrame(arr) + is_selected = df.select_dtypes(np.number).shape == df.shape + assert not is_selected + + @pytest.mark.parametrize( + "expected, float_dtypes", + [ + [ + DataFrame( + {"A": range(3), "B": range(5, 8), "C": range(10, 7, -1)} + ).astype(dtype={"A": float, "B": np.float64, "C": np.float32}), + float, + ], + [ + DataFrame( + {"A": range(3), "B": range(5, 8), "C": range(10, 7, -1)} + ).astype(dtype={"A": float, "B": np.float64, "C": np.float32}), + "float", + ], + [DataFrame({"C": range(10, 7, -1)}, dtype=np.float32), np.float32], + [ + DataFrame({"A": range(3), "B": range(5, 8)}).astype( + dtype={"A": float, "B": np.float64} + ), + np.float64, + ], + ], + ) + def test_select_dtypes_float_dtype(self, expected, float_dtypes): + # GH#42452 + dtype_dict = {"A": float, "B": np.float64, "C": np.float32} + df = DataFrame( + {"A": range(3), "B": range(5, 8), "C": range(10, 7, -1)}, + ) + df = df.astype(dtype_dict) + result = df.select_dtypes(include=float_dtypes) + tm.assert_frame_equal(result, expected) + + def test_np_bool_ea_boolean_include_number(self): + # GH 46870 + df = DataFrame( + { + "a": [1, 2, 3], + "b": pd.Series([True, False, True], dtype="boolean"), + "c": np.array([True, False, True]), + "d": pd.Categorical([True, False, True]), + "e": pd.arrays.SparseArray([True, False, True]), + } + ) + result = df.select_dtypes(include="number") + expected = DataFrame({"a": [1, 2, 3]}) + tm.assert_frame_equal(result, expected) + + def test_select_dtypes_no_view(self): + # https://github.com/pandas-dev/pandas/issues/48090 + # result of this method is not a view on the original dataframe + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + df_orig = df.copy() + result = df.select_dtypes(include=["number"]) + result.iloc[0, 0] = 0 + tm.assert_frame_equal(df, df_orig) + + def test_select_dtype_object_and_str(self, using_infer_string): + # https://github.com/pandas-dev/pandas/issues/61916 + df = DataFrame( + { + "a": ["a", "b", "c"], + "b": [1, 2, 3], + "c": pd.array(["a", "b", "c"], dtype="string"), + } + ) + + # with "object" -> only select the object or default str dtype column + result = df.select_dtypes(include=["object"]) + expected = df[["a"]] + tm.assert_frame_equal(result, expected) + + # with "string" -> select both the default 'str' and the nullable 'string' + result = df.select_dtypes(include=["string"]) + if using_infer_string: + expected = df[["a", "c"]] + else: + expected = df[["c"]] + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_set_axis.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_set_axis.py new file mode 100644 index 0000000000000000000000000000000000000000..8d249bc7b7fa471db401ed44e50fdb514cf85a51 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_set_axis.py @@ -0,0 +1,143 @@ +import numpy as np +import pytest + +from pandas import ( + DataFrame, + Series, +) +import pandas._testing as tm + + +class SharedSetAxisTests: + @pytest.fixture + def obj(self): + raise NotImplementedError("Implemented by subclasses") + + def test_set_axis(self, obj): + # GH14636; this tests setting index for both Series and DataFrame + new_index = list("abcd")[: len(obj)] + expected = obj.copy() + expected.index = new_index + result = obj.set_axis(new_index, axis=0) + tm.assert_equal(expected, result) + + def test_set_axis_copy(self, obj, using_copy_on_write): + # Test copy keyword GH#47932 + new_index = list("abcd")[: len(obj)] + + orig = obj.iloc[:] + expected = obj.copy() + expected.index = new_index + + result = obj.set_axis(new_index, axis=0, copy=True) + tm.assert_equal(expected, result) + assert result is not obj + # check we DID make a copy + if not using_copy_on_write: + if obj.ndim == 1: + assert not tm.shares_memory(result, obj) + else: + assert not any( + tm.shares_memory(result.iloc[:, i], obj.iloc[:, i]) + for i in range(obj.shape[1]) + ) + + result = obj.set_axis(new_index, axis=0, copy=False) + tm.assert_equal(expected, result) + assert result is not obj + # check we did NOT make a copy + if obj.ndim == 1: + assert tm.shares_memory(result, obj) + else: + assert all( + tm.shares_memory(result.iloc[:, i], obj.iloc[:, i]) + for i in range(obj.shape[1]) + ) + + # copy defaults to True + result = obj.set_axis(new_index, axis=0) + tm.assert_equal(expected, result) + assert result is not obj + if using_copy_on_write: + # check we DID NOT make a copy + if obj.ndim == 1: + assert tm.shares_memory(result, obj) + else: + assert any( + tm.shares_memory(result.iloc[:, i], obj.iloc[:, i]) + for i in range(obj.shape[1]) + ) + # check we DID make a copy + elif obj.ndim == 1: + assert not tm.shares_memory(result, obj) + else: + assert not any( + tm.shares_memory(result.iloc[:, i], obj.iloc[:, i]) + for i in range(obj.shape[1]) + ) + + res = obj.set_axis(new_index, copy=False) + tm.assert_equal(expected, res) + # check we did NOT make a copy + if res.ndim == 1: + assert tm.shares_memory(res, orig) + else: + assert all( + tm.shares_memory(res.iloc[:, i], orig.iloc[:, i]) + for i in range(res.shape[1]) + ) + + def test_set_axis_unnamed_kwarg_warns(self, obj): + # omitting the "axis" parameter + new_index = list("abcd")[: len(obj)] + + expected = obj.copy() + expected.index = new_index + + result = obj.set_axis(new_index) + tm.assert_equal(result, expected) + + @pytest.mark.parametrize("axis", [3, "foo"]) + def test_set_axis_invalid_axis_name(self, axis, obj): + # wrong values for the "axis" parameter + with pytest.raises(ValueError, match="No axis named"): + obj.set_axis(list("abc"), axis=axis) + + def test_set_axis_setattr_index_not_collection(self, obj): + # wrong type + msg = ( + r"Index\(\.\.\.\) must be called with a collection of some " + r"kind, None was passed" + ) + with pytest.raises(TypeError, match=msg): + obj.index = None + + def test_set_axis_setattr_index_wrong_length(self, obj): + # wrong length + msg = ( + f"Length mismatch: Expected axis has {len(obj)} elements, " + f"new values have {len(obj)-1} elements" + ) + with pytest.raises(ValueError, match=msg): + obj.index = np.arange(len(obj) - 1) + + if obj.ndim == 2: + with pytest.raises(ValueError, match="Length mismatch"): + obj.columns = obj.columns[::2] + + +class TestDataFrameSetAxis(SharedSetAxisTests): + @pytest.fixture + def obj(self): + df = DataFrame( + {"A": [1.1, 2.2, 3.3], "B": [5.0, 6.1, 7.2], "C": [4.4, 5.5, 6.6]}, + index=[2010, 2011, 2012], + ) + return df + + +class TestSeriesSetAxis(SharedSetAxisTests): + @pytest.fixture + def obj(self): + ser = Series(np.arange(4), index=[1, 3, 5, 7], dtype="int64") + return ser diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_set_index.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_set_index.py new file mode 100644 index 0000000000000000000000000000000000000000..1c8d365f0d6c056c8c023e5173c9b3671cbfbd48 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_set_index.py @@ -0,0 +1,734 @@ +""" +See also: test_reindex.py:TestReindexSetIndex +""" + +from datetime import ( + datetime, + timedelta, +) + +import numpy as np +import pytest + +from pandas import ( + Categorical, + CategoricalIndex, + DataFrame, + DatetimeIndex, + Index, + MultiIndex, + Series, + date_range, + period_range, + to_datetime, +) +import pandas._testing as tm + + +@pytest.fixture +def frame_of_index_cols(): + """ + Fixture for DataFrame of columns that can be used for indexing + + Columns are ['A', 'B', 'C', 'D', 'E', ('tuple', 'as', 'label')]; + 'A' & 'B' contain duplicates (but are jointly unique), the rest are unique. + + A B C D E (tuple, as, label) + 0 foo one a 0.608477 -0.012500 -1.664297 + 1 foo two b -0.633460 0.249614 -0.364411 + 2 foo three c 0.615256 2.154968 -0.834666 + 3 bar one d 0.234246 1.085675 0.718445 + 4 bar two e 0.533841 -0.005702 -3.533912 + """ + df = DataFrame( + { + "A": ["foo", "foo", "foo", "bar", "bar"], + "B": ["one", "two", "three", "one", "two"], + "C": ["a", "b", "c", "d", "e"], + "D": np.random.default_rng(2).standard_normal(5), + "E": np.random.default_rng(2).standard_normal(5), + ("tuple", "as", "label"): np.random.default_rng(2).standard_normal(5), + } + ) + return df + + +class TestSetIndex: + def test_set_index_multiindex(self): + # segfault in GH#3308 + d = {"t1": [2, 2.5, 3], "t2": [4, 5, 6]} + df = DataFrame(d) + tuples = [(0, 1), (0, 2), (1, 2)] + df["tuples"] = tuples + + index = MultiIndex.from_tuples(df["tuples"]) + # it works! + df.set_index(index) + + def test_set_index_empty_column(self): + # GH#1971 + df = DataFrame( + [ + {"a": 1, "p": 0}, + {"a": 2, "m": 10}, + {"a": 3, "m": 11, "p": 20}, + {"a": 4, "m": 12, "p": 21}, + ], + columns=["a", "m", "p", "x"], + ) + + result = df.set_index(["a", "x"]) + + expected = df[["m", "p"]] + expected.index = MultiIndex.from_arrays([df["a"], df["x"]], names=["a", "x"]) + tm.assert_frame_equal(result, expected) + + def test_set_index_empty_dataframe(self): + # GH#38419 + df1 = DataFrame( + {"a": Series(dtype="datetime64[ns]"), "b": Series(dtype="int64"), "c": []} + ) + + df2 = df1.set_index(["a", "b"]) + result = df2.index.to_frame().dtypes + expected = df1[["a", "b"]].dtypes + tm.assert_series_equal(result, expected) + + def test_set_index_multiindexcolumns(self): + columns = MultiIndex.from_tuples([("foo", 1), ("foo", 2), ("bar", 1)]) + df = DataFrame( + np.random.default_rng(2).standard_normal((3, 3)), columns=columns + ) + + result = df.set_index(df.columns[0]) + + expected = df.iloc[:, 1:] + expected.index = df.iloc[:, 0].values + expected.index.names = [df.columns[0]] + tm.assert_frame_equal(result, expected) + + def test_set_index_timezone(self): + # GH#12358 + # tz-aware Series should retain the tz + idx = DatetimeIndex(["2014-01-01 10:10:10"], tz="UTC").tz_convert("Europe/Rome") + df = DataFrame({"A": idx}) + assert df.set_index(idx).index[0].hour == 11 + assert DatetimeIndex(Series(df.A))[0].hour == 11 + assert df.set_index(df.A).index[0].hour == 11 + + def test_set_index_cast_datetimeindex(self): + df = DataFrame( + { + "A": [datetime(2000, 1, 1) + timedelta(i) for i in range(1000)], + "B": np.random.default_rng(2).standard_normal(1000), + } + ) + + idf = df.set_index("A") + assert isinstance(idf.index, DatetimeIndex) + + def test_set_index_dst(self): + di = date_range("2006-10-29 00:00:00", periods=3, freq="h", tz="US/Pacific") + + df = DataFrame(data={"a": [0, 1, 2], "b": [3, 4, 5]}, index=di).reset_index() + # single level + res = df.set_index("index") + exp = DataFrame( + data={"a": [0, 1, 2], "b": [3, 4, 5]}, + index=Index(di, name="index"), + ) + exp.index = exp.index._with_freq(None) + tm.assert_frame_equal(res, exp) + + # GH#12920 + res = df.set_index(["index", "a"]) + exp_index = MultiIndex.from_arrays([di, [0, 1, 2]], names=["index", "a"]) + exp = DataFrame({"b": [3, 4, 5]}, index=exp_index) + tm.assert_frame_equal(res, exp) + + def test_set_index(self, float_string_frame): + df = float_string_frame + idx = Index(np.arange(len(df))[::-1]) + + df = df.set_index(idx) + tm.assert_index_equal(df.index, idx) + with pytest.raises(ValueError, match="Length mismatch"): + df.set_index(idx[::2]) + + def test_set_index_names(self): + df = DataFrame( + np.ones((10, 4)), + columns=Index(list("ABCD")), + index=Index([f"i-{i}" for i in range(10)]), + ) + df.index.name = "name" + + assert df.set_index(df.index).index.names == ["name"] + + mi = MultiIndex.from_arrays(df[["A", "B"]].T.values, names=["A", "B"]) + mi2 = MultiIndex.from_arrays( + df[["A", "B", "A", "B"]].T.values, names=["A", "B", "C", "D"] + ) + + df = df.set_index(["A", "B"]) + + assert df.set_index(df.index).index.names == ["A", "B"] + + # Check that set_index isn't converting a MultiIndex into an Index + assert isinstance(df.set_index(df.index).index, MultiIndex) + + # Check actual equality + tm.assert_index_equal(df.set_index(df.index).index, mi) + + idx2 = df.index.rename(["C", "D"]) + + # Check that [MultiIndex, MultiIndex] yields a MultiIndex rather + # than a pair of tuples + assert isinstance(df.set_index([df.index, idx2]).index, MultiIndex) + + # Check equality + tm.assert_index_equal(df.set_index([df.index, idx2]).index, mi2) + + # A has duplicate values, C does not + @pytest.mark.parametrize("keys", ["A", "C", ["A", "B"], ("tuple", "as", "label")]) + @pytest.mark.parametrize("inplace", [True, False]) + @pytest.mark.parametrize("drop", [True, False]) + def test_set_index_drop_inplace(self, frame_of_index_cols, drop, inplace, keys): + df = frame_of_index_cols + + if isinstance(keys, list): + idx = MultiIndex.from_arrays([df[x] for x in keys], names=keys) + else: + idx = Index(df[keys], name=keys) + expected = df.drop(keys, axis=1) if drop else df + expected.index = idx + + if inplace: + result = df.copy() + return_value = result.set_index(keys, drop=drop, inplace=True) + assert return_value is None + else: + result = df.set_index(keys, drop=drop) + + tm.assert_frame_equal(result, expected) + + # A has duplicate values, C does not + @pytest.mark.parametrize("keys", ["A", "C", ["A", "B"], ("tuple", "as", "label")]) + @pytest.mark.parametrize("drop", [True, False]) + def test_set_index_append(self, frame_of_index_cols, drop, keys): + df = frame_of_index_cols + + keys = keys if isinstance(keys, list) else [keys] + idx = MultiIndex.from_arrays( + [df.index] + [df[x] for x in keys], names=[None] + keys + ) + expected = df.drop(keys, axis=1) if drop else df.copy() + expected.index = idx + + result = df.set_index(keys, drop=drop, append=True) + + tm.assert_frame_equal(result, expected) + + # A has duplicate values, C does not + @pytest.mark.parametrize("keys", ["A", "C", ["A", "B"], ("tuple", "as", "label")]) + @pytest.mark.parametrize("drop", [True, False]) + def test_set_index_append_to_multiindex(self, frame_of_index_cols, drop, keys): + # append to existing multiindex + df = frame_of_index_cols.set_index(["D"], drop=drop, append=True) + + keys = keys if isinstance(keys, list) else [keys] + expected = frame_of_index_cols.set_index(["D"] + keys, drop=drop, append=True) + + result = df.set_index(keys, drop=drop, append=True) + + tm.assert_frame_equal(result, expected) + + def test_set_index_after_mutation(self): + # GH#1590 + df = DataFrame({"val": [0, 1, 2], "key": ["a", "b", "c"]}) + expected = DataFrame({"val": [1, 2]}, Index(["b", "c"], name="key")) + + df2 = df.loc[df.index.map(lambda indx: indx >= 1)] + result = df2.set_index("key") + tm.assert_frame_equal(result, expected) + + # MultiIndex constructor does not work directly on Series -> lambda + # Add list-of-list constructor because list is ambiguous -> lambda + # also test index name if append=True (name is duplicate here for B) + @pytest.mark.parametrize( + "box", + [ + Series, + Index, + np.array, + list, + lambda x: [list(x)], + lambda x: MultiIndex.from_arrays([x]), + ], + ) + @pytest.mark.parametrize( + "append, index_name", [(True, None), (True, "B"), (True, "test"), (False, None)] + ) + @pytest.mark.parametrize("drop", [True, False]) + def test_set_index_pass_single_array( + self, frame_of_index_cols, drop, append, index_name, box + ): + df = frame_of_index_cols + df.index.name = index_name + + key = box(df["B"]) + if box == list: + # list of strings gets interpreted as list of keys + msg = "['one', 'two', 'three', 'one', 'two']" + with pytest.raises(KeyError, match=msg): + df.set_index(key, drop=drop, append=append) + else: + # np.array/list-of-list "forget" the name of B + name_mi = getattr(key, "names", None) + name = [getattr(key, "name", None)] if name_mi is None else name_mi + + result = df.set_index(key, drop=drop, append=append) + + # only valid column keys are dropped + # since B is always passed as array above, nothing is dropped + expected = df.set_index(["B"], drop=False, append=append) + expected.index.names = [index_name] + name if append else name + + tm.assert_frame_equal(result, expected) + + # MultiIndex constructor does not work directly on Series -> lambda + # also test index name if append=True (name is duplicate here for A & B) + @pytest.mark.parametrize( + "box", [Series, Index, np.array, list, lambda x: MultiIndex.from_arrays([x])] + ) + @pytest.mark.parametrize( + "append, index_name", + [(True, None), (True, "A"), (True, "B"), (True, "test"), (False, None)], + ) + @pytest.mark.parametrize("drop", [True, False]) + def test_set_index_pass_arrays( + self, frame_of_index_cols, drop, append, index_name, box + ): + df = frame_of_index_cols + df.index.name = index_name + + keys = ["A", box(df["B"])] + # np.array/list "forget" the name of B + names = ["A", None if box in [np.array, list, tuple, iter] else "B"] + + result = df.set_index(keys, drop=drop, append=append) + + # only valid column keys are dropped + # since B is always passed as array above, only A is dropped, if at all + expected = df.set_index(["A", "B"], drop=False, append=append) + expected = expected.drop("A", axis=1) if drop else expected + expected.index.names = [index_name] + names if append else names + + tm.assert_frame_equal(result, expected) + + # MultiIndex constructor does not work directly on Series -> lambda + # We also emulate a "constructor" for the label -> lambda + # also test index name if append=True (name is duplicate here for A) + @pytest.mark.parametrize( + "box2", + [ + Series, + Index, + np.array, + list, + iter, + lambda x: MultiIndex.from_arrays([x]), + lambda x: x.name, + ], + ) + @pytest.mark.parametrize( + "box1", + [ + Series, + Index, + np.array, + list, + iter, + lambda x: MultiIndex.from_arrays([x]), + lambda x: x.name, + ], + ) + @pytest.mark.parametrize( + "append, index_name", [(True, None), (True, "A"), (True, "test"), (False, None)] + ) + @pytest.mark.parametrize("drop", [True, False]) + def test_set_index_pass_arrays_duplicate( + self, frame_of_index_cols, drop, append, index_name, box1, box2 + ): + df = frame_of_index_cols + df.index.name = index_name + + keys = [box1(df["A"]), box2(df["A"])] + result = df.set_index(keys, drop=drop, append=append) + + # if either box is iter, it has been consumed; re-read + keys = [box1(df["A"]), box2(df["A"])] + + # need to adapt first drop for case that both keys are 'A' -- + # cannot drop the same column twice; + # plain == would give ambiguous Boolean error for containers + first_drop = ( + False + if ( + isinstance(keys[0], str) + and keys[0] == "A" + and isinstance(keys[1], str) + and keys[1] == "A" + ) + else drop + ) + # to test against already-tested behaviour, we add sequentially, + # hence second append always True; must wrap keys in list, otherwise + # box = list would be interpreted as keys + expected = df.set_index([keys[0]], drop=first_drop, append=append) + expected = expected.set_index([keys[1]], drop=drop, append=True) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("append", [True, False]) + @pytest.mark.parametrize("drop", [True, False]) + def test_set_index_pass_multiindex(self, frame_of_index_cols, drop, append): + df = frame_of_index_cols + keys = MultiIndex.from_arrays([df["A"], df["B"]], names=["A", "B"]) + + result = df.set_index(keys, drop=drop, append=append) + + # setting with a MultiIndex will never drop columns + expected = df.set_index(["A", "B"], drop=False, append=append) + + tm.assert_frame_equal(result, expected) + + def test_construction_with_categorical_index(self): + ci = CategoricalIndex(list("ab") * 5, name="B") + + # with Categorical + df = DataFrame( + {"A": np.random.default_rng(2).standard_normal(10), "B": ci.values} + ) + idf = df.set_index("B") + tm.assert_index_equal(idf.index, ci) + + # from a CategoricalIndex + df = DataFrame({"A": np.random.default_rng(2).standard_normal(10), "B": ci}) + idf = df.set_index("B") + tm.assert_index_equal(idf.index, ci) + + # round-trip + idf = idf.reset_index().set_index("B") + tm.assert_index_equal(idf.index, ci) + + def test_set_index_preserve_categorical_dtype(self): + # GH#13743, GH#13854 + df = DataFrame( + { + "A": [1, 2, 1, 1, 2], + "B": [10, 16, 22, 28, 34], + "C1": Categorical(list("abaab"), categories=list("bac"), ordered=False), + "C2": Categorical(list("abaab"), categories=list("bac"), ordered=True), + } + ) + for cols in ["C1", "C2", ["A", "C1"], ["A", "C2"], ["C1", "C2"]]: + result = df.set_index(cols).reset_index() + result = result.reindex(columns=df.columns) + tm.assert_frame_equal(result, df) + + def test_set_index_datetime(self): + # GH#3950 + df = DataFrame( + { + "label": ["a", "a", "a", "b", "b", "b"], + "datetime": [ + "2011-07-19 07:00:00", + "2011-07-19 08:00:00", + "2011-07-19 09:00:00", + "2011-07-19 07:00:00", + "2011-07-19 08:00:00", + "2011-07-19 09:00:00", + ], + "value": range(6), + } + ) + df.index = to_datetime(df.pop("datetime"), utc=True) + df.index = df.index.tz_convert("US/Pacific") + + expected = DatetimeIndex( + ["2011-07-19 07:00:00", "2011-07-19 08:00:00", "2011-07-19 09:00:00"], + name="datetime", + ) + expected = expected.tz_localize("UTC").tz_convert("US/Pacific") + + df = df.set_index("label", append=True) + tm.assert_index_equal(df.index.levels[0], expected) + tm.assert_index_equal(df.index.levels[1], Index(["a", "b"], name="label")) + assert df.index.names == ["datetime", "label"] + + df = df.swaplevel(0, 1) + tm.assert_index_equal(df.index.levels[0], Index(["a", "b"], name="label")) + tm.assert_index_equal(df.index.levels[1], expected) + assert df.index.names == ["label", "datetime"] + + df = DataFrame(np.random.default_rng(2).random(6)) + idx1 = DatetimeIndex( + [ + "2011-07-19 07:00:00", + "2011-07-19 08:00:00", + "2011-07-19 09:00:00", + "2011-07-19 07:00:00", + "2011-07-19 08:00:00", + "2011-07-19 09:00:00", + ], + tz="US/Eastern", + ) + idx2 = DatetimeIndex( + [ + "2012-04-01 09:00", + "2012-04-01 09:00", + "2012-04-01 09:00", + "2012-04-02 09:00", + "2012-04-02 09:00", + "2012-04-02 09:00", + ], + tz="US/Eastern", + ) + idx3 = date_range("2011-01-01 09:00", periods=6, tz="Asia/Tokyo") + idx3 = idx3._with_freq(None) + + df = df.set_index(idx1) + df = df.set_index(idx2, append=True) + df = df.set_index(idx3, append=True) + + expected1 = DatetimeIndex( + ["2011-07-19 07:00:00", "2011-07-19 08:00:00", "2011-07-19 09:00:00"], + tz="US/Eastern", + ) + expected2 = DatetimeIndex( + ["2012-04-01 09:00", "2012-04-02 09:00"], tz="US/Eastern" + ) + + tm.assert_index_equal(df.index.levels[0], expected1) + tm.assert_index_equal(df.index.levels[1], expected2) + tm.assert_index_equal(df.index.levels[2], idx3) + + # GH#7092 + tm.assert_index_equal(df.index.get_level_values(0), idx1) + tm.assert_index_equal(df.index.get_level_values(1), idx2) + tm.assert_index_equal(df.index.get_level_values(2), idx3) + + def test_set_index_period(self): + # GH#6631 + df = DataFrame(np.random.default_rng(2).random(6)) + idx1 = period_range("2011-01-01", periods=3, freq="M") + idx1 = idx1.append(idx1) + idx2 = period_range("2013-01-01 09:00", periods=2, freq="h") + idx2 = idx2.append(idx2).append(idx2) + idx3 = period_range("2005", periods=6, freq="Y") + + df = df.set_index(idx1) + df = df.set_index(idx2, append=True) + df = df.set_index(idx3, append=True) + + expected1 = period_range("2011-01-01", periods=3, freq="M") + expected2 = period_range("2013-01-01 09:00", periods=2, freq="h") + + tm.assert_index_equal(df.index.levels[0], expected1) + tm.assert_index_equal(df.index.levels[1], expected2) + tm.assert_index_equal(df.index.levels[2], idx3) + + tm.assert_index_equal(df.index.get_level_values(0), idx1) + tm.assert_index_equal(df.index.get_level_values(1), idx2) + tm.assert_index_equal(df.index.get_level_values(2), idx3) + + +class TestSetIndexInvalid: + def test_set_index_verify_integrity(self, frame_of_index_cols): + df = frame_of_index_cols + + with pytest.raises(ValueError, match="Index has duplicate keys"): + df.set_index("A", verify_integrity=True) + # with MultiIndex + with pytest.raises(ValueError, match="Index has duplicate keys"): + df.set_index([df["A"], df["A"]], verify_integrity=True) + + @pytest.mark.parametrize("append", [True, False]) + @pytest.mark.parametrize("drop", [True, False]) + def test_set_index_raise_keys(self, frame_of_index_cols, drop, append): + df = frame_of_index_cols + + with pytest.raises(KeyError, match="['foo', 'bar', 'baz']"): + # column names are A-E, as well as one tuple + df.set_index(["foo", "bar", "baz"], drop=drop, append=append) + + # non-existent key in list with arrays + with pytest.raises(KeyError, match="X"): + df.set_index([df["A"], df["B"], "X"], drop=drop, append=append) + + msg = "[('foo', 'foo', 'foo', 'bar', 'bar')]" + # tuples always raise KeyError + with pytest.raises(KeyError, match=msg): + df.set_index(tuple(df["A"]), drop=drop, append=append) + + # also within a list + with pytest.raises(KeyError, match=msg): + df.set_index(["A", df["A"], tuple(df["A"])], drop=drop, append=append) + + @pytest.mark.parametrize("append", [True, False]) + @pytest.mark.parametrize("drop", [True, False]) + @pytest.mark.parametrize("box", [set], ids=["set"]) + def test_set_index_raise_on_type(self, frame_of_index_cols, box, drop, append): + df = frame_of_index_cols + + msg = 'The parameter "keys" may be a column key, .*' + # forbidden type, e.g. set + with pytest.raises(TypeError, match=msg): + df.set_index(box(df["A"]), drop=drop, append=append) + + # forbidden type in list, e.g. set + with pytest.raises(TypeError, match=msg): + df.set_index(["A", df["A"], box(df["A"])], drop=drop, append=append) + + # MultiIndex constructor does not work directly on Series -> lambda + @pytest.mark.parametrize( + "box", + [Series, Index, np.array, iter, lambda x: MultiIndex.from_arrays([x])], + ids=["Series", "Index", "np.array", "iter", "MultiIndex"], + ) + @pytest.mark.parametrize("length", [4, 6], ids=["too_short", "too_long"]) + @pytest.mark.parametrize("append", [True, False]) + @pytest.mark.parametrize("drop", [True, False]) + def test_set_index_raise_on_len( + self, frame_of_index_cols, box, length, drop, append + ): + # GH 24984 + df = frame_of_index_cols # has length 5 + + values = np.random.default_rng(2).integers(0, 10, (length,)) + + msg = "Length mismatch: Expected 5 rows, received array of length.*" + + # wrong length directly + with pytest.raises(ValueError, match=msg): + df.set_index(box(values), drop=drop, append=append) + + # wrong length in list + with pytest.raises(ValueError, match=msg): + df.set_index(["A", df.A, box(values)], drop=drop, append=append) + + +class TestSetIndexCustomLabelType: + def test_set_index_custom_label_type(self): + # GH#24969 + + class Thing: + def __init__(self, name, color) -> None: + self.name = name + self.color = color + + def __str__(self) -> str: + return f"" + + # necessary for pretty KeyError + __repr__ = __str__ + + thing1 = Thing("One", "red") + thing2 = Thing("Two", "blue") + df = DataFrame({thing1: [0, 1], thing2: [2, 3]}) + expected = DataFrame({thing1: [0, 1]}, index=Index([2, 3], name=thing2)) + + # use custom label directly + result = df.set_index(thing2) + tm.assert_frame_equal(result, expected) + + # custom label wrapped in list + result = df.set_index([thing2]) + tm.assert_frame_equal(result, expected) + + # missing key + thing3 = Thing("Three", "pink") + msg = "" + with pytest.raises(KeyError, match=msg): + # missing label directly + df.set_index(thing3) + + with pytest.raises(KeyError, match=msg): + # missing label in list + df.set_index([thing3]) + + def test_set_index_custom_label_hashable_iterable(self): + # GH#24969 + + # actual example discussed in GH 24984 was e.g. for shapely.geometry + # objects (e.g. a collection of Points) that can be both hashable and + # iterable; using frozenset as a stand-in for testing here + + class Thing(frozenset): + # need to stabilize repr for KeyError (due to random order in sets) + def __repr__(self) -> str: + tmp = sorted(self) + joined_reprs = ", ".join(map(repr, tmp)) + # double curly brace prints one brace in format string + return f"frozenset({{{joined_reprs}}})" + + thing1 = Thing(["One", "red"]) + thing2 = Thing(["Two", "blue"]) + df = DataFrame({thing1: [0, 1], thing2: [2, 3]}) + expected = DataFrame({thing1: [0, 1]}, index=Index([2, 3], name=thing2)) + + # use custom label directly + result = df.set_index(thing2) + tm.assert_frame_equal(result, expected) + + # custom label wrapped in list + result = df.set_index([thing2]) + tm.assert_frame_equal(result, expected) + + # missing key + thing3 = Thing(["Three", "pink"]) + msg = r"frozenset\(\{'Three', 'pink'\}\)" + with pytest.raises(KeyError, match=msg): + # missing label directly + df.set_index(thing3) + + with pytest.raises(KeyError, match=msg): + # missing label in list + df.set_index([thing3]) + + def test_set_index_custom_label_type_raises(self): + # GH#24969 + + # purposefully inherit from something unhashable + class Thing(set): + def __init__(self, name, color) -> None: + self.name = name + self.color = color + + def __str__(self) -> str: + return f"" + + thing1 = Thing("One", "red") + thing2 = Thing("Two", "blue") + df = DataFrame([[0, 2], [1, 3]], columns=[thing1, thing2]) + + msg = 'The parameter "keys" may be a column key, .*' + + with pytest.raises(TypeError, match=msg): + # use custom label directly + df.set_index(thing2) + + with pytest.raises(TypeError, match=msg): + # custom label wrapped in list + df.set_index([thing2]) + + def test_set_index_periodindex(self): + # GH#6631 + df = DataFrame(np.random.default_rng(2).random(6)) + idx1 = period_range("2011/01/01", periods=6, freq="M") + idx2 = period_range("2013", periods=6, freq="Y") + + df = df.set_index(idx1) + tm.assert_index_equal(df.index, idx1) + df = df.set_index(idx2) + tm.assert_index_equal(df.index, idx2) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_shift.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_shift.py new file mode 100644 index 0000000000000000000000000000000000000000..abb30595fdcb8466f1873642c2c355c92a61cd49 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_shift.py @@ -0,0 +1,764 @@ +import numpy as np +import pytest + +import pandas.util._test_decorators as td + +import pandas as pd +from pandas import ( + CategoricalIndex, + DataFrame, + Index, + NaT, + Series, + date_range, + offsets, +) +import pandas._testing as tm + + +class TestDataFrameShift: + def test_shift_axis1_with_valid_fill_value_one_array(self): + # Case with axis=1 that does not go through the "len(arrays)>1" path + # in DataFrame.shift + data = np.random.default_rng(2).standard_normal((5, 3)) + df = DataFrame(data) + res = df.shift(axis=1, periods=1, fill_value=12345) + expected = df.T.shift(periods=1, fill_value=12345).T + tm.assert_frame_equal(res, expected) + + # same but with an 1D ExtensionArray backing it + df2 = df[[0]].astype("Float64") + res2 = df2.shift(axis=1, periods=1, fill_value=12345) + expected2 = DataFrame([12345] * 5, dtype="Float64") + tm.assert_frame_equal(res2, expected2) + + def test_shift_deprecate_freq_and_fill_value(self, frame_or_series): + # Can't pass both! + obj = frame_or_series( + np.random.default_rng(2).standard_normal(5), + index=date_range("1/1/2000", periods=5, freq="h"), + ) + + msg = ( + "Passing a 'freq' together with a 'fill_value' silently ignores the " + "fill_value" + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + obj.shift(1, fill_value=1, freq="h") + + if frame_or_series is DataFrame: + obj.columns = date_range("1/1/2000", periods=1, freq="h") + with tm.assert_produces_warning(FutureWarning, match=msg): + obj.shift(1, axis=1, fill_value=1, freq="h") + + @pytest.mark.parametrize( + "input_data, output_data", + [(np.empty(shape=(0,)), []), (np.ones(shape=(2,)), [np.nan, 1.0])], + ) + def test_shift_non_writable_array(self, input_data, output_data, frame_or_series): + # GH21049 Verify whether non writable numpy array is shiftable + input_data.setflags(write=False) + + result = frame_or_series(input_data).shift(1) + if frame_or_series is not Series: + # need to explicitly specify columns in the empty case + expected = frame_or_series( + output_data, + index=range(len(output_data)), + columns=range(1), + dtype="float64", + ) + else: + expected = frame_or_series(output_data, dtype="float64") + + tm.assert_equal(result, expected) + + def test_shift_mismatched_freq(self, frame_or_series): + ts = frame_or_series( + np.random.default_rng(2).standard_normal(5), + index=date_range("1/1/2000", periods=5, freq="h"), + ) + + result = ts.shift(1, freq="5min") + exp_index = ts.index.shift(1, freq="5min") + tm.assert_index_equal(result.index, exp_index) + + # GH#1063, multiple of same base + result = ts.shift(1, freq="4h") + exp_index = ts.index + offsets.Hour(4) + tm.assert_index_equal(result.index, exp_index) + + @pytest.mark.parametrize( + "obj", + [ + Series([np.arange(5)]), + date_range("1/1/2011", periods=24, freq="h"), + Series(range(5), index=date_range("2017", periods=5)), + ], + ) + @pytest.mark.parametrize("shift_size", [0, 1, 2]) + def test_shift_always_copy(self, obj, shift_size, frame_or_series): + # GH#22397 + if frame_or_series is not Series: + obj = obj.to_frame() + assert obj.shift(shift_size) is not obj + + def test_shift_object_non_scalar_fill(self): + # shift requires scalar fill_value except for object dtype + ser = Series(range(3)) + with pytest.raises(ValueError, match="fill_value must be a scalar"): + ser.shift(1, fill_value=[]) + + df = ser.to_frame() + with pytest.raises(ValueError, match="fill_value must be a scalar"): + df.shift(1, fill_value=np.arange(3)) + + obj_ser = ser.astype(object) + result = obj_ser.shift(1, fill_value={}) + assert result[0] == {} + + obj_df = obj_ser.to_frame() + result = obj_df.shift(1, fill_value={}) + assert result.iloc[0, 0] == {} + + def test_shift_int(self, datetime_frame, frame_or_series): + ts = tm.get_obj(datetime_frame, frame_or_series).astype(int) + shifted = ts.shift(1) + expected = ts.astype(float).shift(1) + tm.assert_equal(shifted, expected) + + @pytest.mark.parametrize("dtype", ["int32", "int64"]) + def test_shift_32bit_take(self, frame_or_series, dtype): + # 32-bit taking + # GH#8129 + index = date_range("2000-01-01", periods=5) + arr = np.arange(5, dtype=dtype) + s1 = frame_or_series(arr, index=index) + p = arr[1] + result = s1.shift(periods=p) + expected = frame_or_series([np.nan, 0, 1, 2, 3], index=index) + tm.assert_equal(result, expected) + + @pytest.mark.parametrize("periods", [1, 2, 3, 4]) + def test_shift_preserve_freqstr(self, periods, frame_or_series): + # GH#21275 + obj = frame_or_series( + range(periods), + index=date_range("2016-1-1 00:00:00", periods=periods, freq="h"), + ) + + result = obj.shift(1, "2h") + + expected = frame_or_series( + range(periods), + index=date_range("2016-1-1 02:00:00", periods=periods, freq="h"), + ) + tm.assert_equal(result, expected) + + def test_shift_dst(self, frame_or_series): + # GH#13926 + dates = date_range("2016-11-06", freq="h", periods=10, tz="US/Eastern") + obj = frame_or_series(dates) + + res = obj.shift(0) + tm.assert_equal(res, obj) + assert tm.get_dtype(res) == "datetime64[ns, US/Eastern]" + + res = obj.shift(1) + exp_vals = [NaT] + dates.astype(object).values.tolist()[:9] + exp = frame_or_series(exp_vals) + tm.assert_equal(res, exp) + assert tm.get_dtype(res) == "datetime64[ns, US/Eastern]" + + res = obj.shift(-2) + exp_vals = dates.astype(object).values.tolist()[2:] + [NaT, NaT] + exp = frame_or_series(exp_vals) + tm.assert_equal(res, exp) + assert tm.get_dtype(res) == "datetime64[ns, US/Eastern]" + + @pytest.mark.parametrize("ex", [10, -10, 20, -20]) + def test_shift_dst_beyond(self, frame_or_series, ex): + # GH#13926 + dates = date_range("2016-11-06", freq="h", periods=10, tz="US/Eastern") + obj = frame_or_series(dates) + res = obj.shift(ex) + exp = frame_or_series([NaT] * 10, dtype="datetime64[ns, US/Eastern]") + tm.assert_equal(res, exp) + assert tm.get_dtype(res) == "datetime64[ns, US/Eastern]" + + def test_shift_by_zero(self, datetime_frame, frame_or_series): + # shift by 0 + obj = tm.get_obj(datetime_frame, frame_or_series) + unshifted = obj.shift(0) + tm.assert_equal(unshifted, obj) + + def test_shift(self, datetime_frame): + # naive shift + ser = datetime_frame["A"] + + shifted = datetime_frame.shift(5) + tm.assert_index_equal(shifted.index, datetime_frame.index) + + shifted_ser = ser.shift(5) + tm.assert_series_equal(shifted["A"], shifted_ser) + + shifted = datetime_frame.shift(-5) + tm.assert_index_equal(shifted.index, datetime_frame.index) + + shifted_ser = ser.shift(-5) + tm.assert_series_equal(shifted["A"], shifted_ser) + + unshifted = datetime_frame.shift(5).shift(-5) + tm.assert_numpy_array_equal( + unshifted.dropna().values, datetime_frame.values[:-5] + ) + + unshifted_ser = ser.shift(5).shift(-5) + tm.assert_numpy_array_equal(unshifted_ser.dropna().values, ser.values[:-5]) + + def test_shift_by_offset(self, datetime_frame, frame_or_series): + # shift by DateOffset + obj = tm.get_obj(datetime_frame, frame_or_series) + offset = offsets.BDay() + + shifted = obj.shift(5, freq=offset) + assert len(shifted) == len(obj) + unshifted = shifted.shift(-5, freq=offset) + tm.assert_equal(unshifted, obj) + + shifted2 = obj.shift(5, freq="B") + tm.assert_equal(shifted, shifted2) + + unshifted = obj.shift(0, freq=offset) + tm.assert_equal(unshifted, obj) + + d = obj.index[0] + shifted_d = d + offset * 5 + if frame_or_series is DataFrame: + tm.assert_series_equal(obj.xs(d), shifted.xs(shifted_d), check_names=False) + else: + tm.assert_almost_equal(obj.at[d], shifted.at[shifted_d]) + + def test_shift_with_periodindex(self, frame_or_series): + # Shifting with PeriodIndex + ps = DataFrame( + np.arange(4, dtype=float), index=pd.period_range("2020-01-01", periods=4) + ) + ps = tm.get_obj(ps, frame_or_series) + + shifted = ps.shift(1) + unshifted = shifted.shift(-1) + tm.assert_index_equal(shifted.index, ps.index) + tm.assert_index_equal(unshifted.index, ps.index) + if frame_or_series is DataFrame: + tm.assert_numpy_array_equal( + unshifted.iloc[:, 0].dropna().values, ps.iloc[:-1, 0].values + ) + else: + tm.assert_numpy_array_equal(unshifted.dropna().values, ps.values[:-1]) + + shifted2 = ps.shift(1, "D") + shifted3 = ps.shift(1, offsets.Day()) + tm.assert_equal(shifted2, shifted3) + tm.assert_equal(ps, shifted2.shift(-1, "D")) + + msg = "does not match PeriodIndex freq" + with pytest.raises(ValueError, match=msg): + ps.shift(freq="W") + + # legacy support + shifted4 = ps.shift(1, freq="D") + tm.assert_equal(shifted2, shifted4) + + shifted5 = ps.shift(1, freq=offsets.Day()) + tm.assert_equal(shifted5, shifted4) + + def test_shift_other_axis(self): + # shift other axis + # GH#6371 + df = DataFrame(np.random.default_rng(2).random((10, 5))) + expected = pd.concat( + [DataFrame(np.nan, index=df.index, columns=[0]), df.iloc[:, 0:-1]], + ignore_index=True, + axis=1, + ) + result = df.shift(1, axis=1) + tm.assert_frame_equal(result, expected) + + def test_shift_named_axis(self): + # shift named axis + df = DataFrame(np.random.default_rng(2).random((10, 5))) + expected = pd.concat( + [DataFrame(np.nan, index=df.index, columns=[0]), df.iloc[:, 0:-1]], + ignore_index=True, + axis=1, + ) + result = df.shift(1, axis="columns") + tm.assert_frame_equal(result, expected) + + def test_shift_other_axis_with_freq(self, datetime_frame): + obj = datetime_frame.T + offset = offsets.BDay() + + # GH#47039 + shifted = obj.shift(5, freq=offset, axis=1) + assert len(shifted) == len(obj) + unshifted = shifted.shift(-5, freq=offset, axis=1) + tm.assert_equal(unshifted, obj) + + def test_shift_bool(self): + df = DataFrame({"high": [True, False], "low": [False, False]}) + rs = df.shift(1) + xp = DataFrame( + np.array([[np.nan, np.nan], [True, False]], dtype=object), + columns=["high", "low"], + ) + tm.assert_frame_equal(rs, xp) + + def test_shift_categorical1(self, frame_or_series): + # GH#9416 + obj = frame_or_series(["a", "b", "c", "d"], dtype="category") + + rt = obj.shift(1).shift(-1) + tm.assert_equal(obj.iloc[:-1], rt.dropna()) + + def get_cat_values(ndframe): + # For Series we could just do ._values; for DataFrame + # we may be able to do this if we ever have 2D Categoricals + return ndframe._mgr.arrays[0] + + cat = get_cat_values(obj) + + sp1 = obj.shift(1) + tm.assert_index_equal(obj.index, sp1.index) + assert np.all(get_cat_values(sp1).codes[:1] == -1) + assert np.all(cat.codes[:-1] == get_cat_values(sp1).codes[1:]) + + sn2 = obj.shift(-2) + tm.assert_index_equal(obj.index, sn2.index) + assert np.all(get_cat_values(sn2).codes[-2:] == -1) + assert np.all(cat.codes[2:] == get_cat_values(sn2).codes[:-2]) + + tm.assert_index_equal(cat.categories, get_cat_values(sp1).categories) + tm.assert_index_equal(cat.categories, get_cat_values(sn2).categories) + + def test_shift_categorical(self): + # GH#9416 + s1 = Series(["a", "b", "c"], dtype="category") + s2 = Series(["A", "B", "C"], dtype="category") + df = DataFrame({"one": s1, "two": s2}) + rs = df.shift(1) + xp = DataFrame({"one": s1.shift(1), "two": s2.shift(1)}) + tm.assert_frame_equal(rs, xp) + + def test_shift_categorical_fill_value(self, frame_or_series): + ts = frame_or_series(["a", "b", "c", "d"], dtype="category") + res = ts.shift(1, fill_value="a") + expected = frame_or_series( + pd.Categorical( + ["a", "a", "b", "c"], categories=["a", "b", "c", "d"], ordered=False + ) + ) + tm.assert_equal(res, expected) + + # check for incorrect fill_value + msg = r"Cannot setitem on a Categorical with a new category \(f\)" + with pytest.raises(TypeError, match=msg): + ts.shift(1, fill_value="f") + + def test_shift_fill_value(self, frame_or_series): + # GH#24128 + dti = date_range("1/1/2000", periods=5, freq="h") + + ts = frame_or_series([1.0, 2.0, 3.0, 4.0, 5.0], index=dti) + exp = frame_or_series([0.0, 1.0, 2.0, 3.0, 4.0], index=dti) + # check that fill value works + result = ts.shift(1, fill_value=0.0) + tm.assert_equal(result, exp) + + exp = frame_or_series([0.0, 0.0, 1.0, 2.0, 3.0], index=dti) + result = ts.shift(2, fill_value=0.0) + tm.assert_equal(result, exp) + + ts = frame_or_series([1, 2, 3]) + res = ts.shift(2, fill_value=0) + assert tm.get_dtype(res) == tm.get_dtype(ts) + + # retain integer dtype + obj = frame_or_series([1, 2, 3, 4, 5], index=dti) + exp = frame_or_series([0, 1, 2, 3, 4], index=dti) + result = obj.shift(1, fill_value=0) + tm.assert_equal(result, exp) + + exp = frame_or_series([0, 0, 1, 2, 3], index=dti) + result = obj.shift(2, fill_value=0) + tm.assert_equal(result, exp) + + def test_shift_empty(self): + # Regression test for GH#8019 + df = DataFrame({"foo": []}) + rs = df.shift(-1) + + tm.assert_frame_equal(df, rs) + + def test_shift_duplicate_columns(self): + # GH#9092; verify that position-based shifting works + # in the presence of duplicate columns + column_lists = [list(range(5)), [1] * 5, [1, 1, 2, 2, 1]] + data = np.random.default_rng(2).standard_normal((20, 5)) + + shifted = [] + for columns in column_lists: + df = DataFrame(data.copy(), columns=columns) + for s in range(5): + df.iloc[:, s] = df.iloc[:, s].shift(s + 1) + df.columns = range(5) + shifted.append(df) + + # sanity check the base case + nulls = shifted[0].isna().sum() + tm.assert_series_equal(nulls, Series(range(1, 6), dtype="int64")) + + # check all answers are the same + tm.assert_frame_equal(shifted[0], shifted[1]) + tm.assert_frame_equal(shifted[0], shifted[2]) + + def test_shift_axis1_multiple_blocks(self, using_array_manager): + # GH#35488 + df1 = DataFrame(np.random.default_rng(2).integers(1000, size=(5, 3))) + df2 = DataFrame(np.random.default_rng(2).integers(1000, size=(5, 2))) + df3 = pd.concat([df1, df2], axis=1) + if not using_array_manager: + assert len(df3._mgr.blocks) == 2 + + result = df3.shift(2, axis=1) + + expected = df3.take([-1, -1, 0, 1, 2], axis=1) + # Explicit cast to float to avoid implicit cast when setting nan. + # Column names aren't unique, so directly calling `expected.astype` won't work. + expected = expected.pipe( + lambda df: df.set_axis(range(df.shape[1]), axis=1) + .astype({0: "float", 1: "float"}) + .set_axis(df.columns, axis=1) + ) + expected.iloc[:, :2] = np.nan + expected.columns = df3.columns + + tm.assert_frame_equal(result, expected) + + # Case with periods < 0 + # rebuild df3 because `take` call above consolidated + df3 = pd.concat([df1, df2], axis=1) + if not using_array_manager: + assert len(df3._mgr.blocks) == 2 + result = df3.shift(-2, axis=1) + + expected = df3.take([2, 3, 4, -1, -1], axis=1) + # Explicit cast to float to avoid implicit cast when setting nan. + # Column names aren't unique, so directly calling `expected.astype` won't work. + expected = expected.pipe( + lambda df: df.set_axis(range(df.shape[1]), axis=1) + .astype({3: "float", 4: "float"}) + .set_axis(df.columns, axis=1) + ) + expected.iloc[:, -2:] = np.nan + expected.columns = df3.columns + + tm.assert_frame_equal(result, expected) + + @td.skip_array_manager_not_yet_implemented # TODO(ArrayManager) axis=1 support + def test_shift_axis1_multiple_blocks_with_int_fill(self): + # GH#42719 + rng = np.random.default_rng(2) + df1 = DataFrame(rng.integers(1000, size=(5, 3), dtype=int)) + df2 = DataFrame(rng.integers(1000, size=(5, 2), dtype=int)) + df3 = pd.concat([df1.iloc[:4, 1:3], df2.iloc[:4, :]], axis=1) + result = df3.shift(2, axis=1, fill_value=np.int_(0)) + assert len(df3._mgr.blocks) == 2 + + expected = df3.take([-1, -1, 0, 1], axis=1) + expected.iloc[:, :2] = np.int_(0) + expected.columns = df3.columns + + tm.assert_frame_equal(result, expected) + + # Case with periods < 0 + df3 = pd.concat([df1.iloc[:4, 1:3], df2.iloc[:4, :]], axis=1) + result = df3.shift(-2, axis=1, fill_value=np.int_(0)) + assert len(df3._mgr.blocks) == 2 + + expected = df3.take([2, 3, -1, -1], axis=1) + expected.iloc[:, -2:] = np.int_(0) + expected.columns = df3.columns + + tm.assert_frame_equal(result, expected) + + def test_period_index_frame_shift_with_freq(self, frame_or_series): + ps = DataFrame(range(4), index=pd.period_range("2020-01-01", periods=4)) + ps = tm.get_obj(ps, frame_or_series) + + shifted = ps.shift(1, freq="infer") + unshifted = shifted.shift(-1, freq="infer") + tm.assert_equal(unshifted, ps) + + shifted2 = ps.shift(freq="D") + tm.assert_equal(shifted, shifted2) + + shifted3 = ps.shift(freq=offsets.Day()) + tm.assert_equal(shifted, shifted3) + + def test_datetime_frame_shift_with_freq(self, datetime_frame, frame_or_series): + dtobj = tm.get_obj(datetime_frame, frame_or_series) + shifted = dtobj.shift(1, freq="infer") + unshifted = shifted.shift(-1, freq="infer") + tm.assert_equal(dtobj, unshifted) + + shifted2 = dtobj.shift(freq=dtobj.index.freq) + tm.assert_equal(shifted, shifted2) + + inferred_ts = DataFrame( + datetime_frame.values, + Index(np.asarray(datetime_frame.index)), + columns=datetime_frame.columns, + ) + inferred_ts = tm.get_obj(inferred_ts, frame_or_series) + shifted = inferred_ts.shift(1, freq="infer") + expected = dtobj.shift(1, freq="infer") + expected.index = expected.index._with_freq(None) + tm.assert_equal(shifted, expected) + + unshifted = shifted.shift(-1, freq="infer") + tm.assert_equal(unshifted, inferred_ts) + + def test_period_index_frame_shift_with_freq_error(self, frame_or_series): + ps = DataFrame(range(4), index=pd.period_range("2020-01-01", periods=4)) + ps = tm.get_obj(ps, frame_or_series) + msg = "Given freq M does not match PeriodIndex freq D" + with pytest.raises(ValueError, match=msg): + ps.shift(freq="M") + + def test_datetime_frame_shift_with_freq_error( + self, datetime_frame, frame_or_series + ): + dtobj = tm.get_obj(datetime_frame, frame_or_series) + no_freq = dtobj.iloc[[0, 5, 7]] + msg = "Freq was not set in the index hence cannot be inferred" + with pytest.raises(ValueError, match=msg): + no_freq.shift(freq="infer") + + def test_shift_dt64values_int_fill_deprecated(self): + # GH#31971 + ser = Series([pd.Timestamp("2020-01-01"), pd.Timestamp("2020-01-02")]) + + with pytest.raises(TypeError, match="value should be a"): + ser.shift(1, fill_value=0) + + df = ser.to_frame() + with pytest.raises(TypeError, match="value should be a"): + df.shift(1, fill_value=0) + + # axis = 1 + df2 = DataFrame({"A": ser, "B": ser}) + df2._consolidate_inplace() + + result = df2.shift(1, axis=1, fill_value=0) + expected = DataFrame({"A": [0, 0], "B": df2["A"]}) + tm.assert_frame_equal(result, expected) + + # same thing but not consolidated; pre-2.0 we got different behavior + df3 = DataFrame({"A": ser}) + df3["B"] = ser + assert len(df3._mgr.arrays) == 2 + result = df3.shift(1, axis=1, fill_value=0) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "as_cat", + [ + pytest.param( + True, + marks=pytest.mark.xfail( + reason="_can_hold_element incorrectly always returns True" + ), + ), + False, + ], + ) + @pytest.mark.parametrize( + "vals", + [ + date_range("2020-01-01", periods=2), + date_range("2020-01-01", periods=2, tz="US/Pacific"), + pd.period_range("2020-01-01", periods=2, freq="D"), + pd.timedelta_range("2020 Days", periods=2, freq="D"), + pd.interval_range(0, 3, periods=2), + pytest.param( + pd.array([1, 2], dtype="Int64"), + marks=pytest.mark.xfail( + reason="_can_hold_element incorrectly always returns True" + ), + ), + pytest.param( + pd.array([1, 2], dtype="Float32"), + marks=pytest.mark.xfail( + reason="_can_hold_element incorrectly always returns True" + ), + ), + ], + ids=lambda x: str(x.dtype), + ) + def test_shift_dt64values_axis1_invalid_fill(self, vals, as_cat): + # GH#44564 + ser = Series(vals) + if as_cat: + ser = ser.astype("category") + + df = DataFrame({"A": ser}) + result = df.shift(-1, axis=1, fill_value="foo") + expected = DataFrame({"A": ["foo", "foo"]}) + tm.assert_frame_equal(result, expected) + + # same thing but multiple blocks + df2 = DataFrame({"A": ser, "B": ser}) + df2._consolidate_inplace() + + result = df2.shift(-1, axis=1, fill_value="foo") + expected = DataFrame({"A": df2["B"], "B": ["foo", "foo"]}) + tm.assert_frame_equal(result, expected) + + # same thing but not consolidated + df3 = DataFrame({"A": ser}) + df3["B"] = ser + assert len(df3._mgr.arrays) == 2 + result = df3.shift(-1, axis=1, fill_value="foo") + tm.assert_frame_equal(result, expected) + + def test_shift_axis1_categorical_columns(self): + # GH#38434 + ci = CategoricalIndex(["a", "b", "c"]) + df = DataFrame( + {"a": [1, 3], "b": [2, 4], "c": [5, 6]}, index=ci[:-1], columns=ci + ) + result = df.shift(axis=1) + + expected = DataFrame( + {"a": [np.nan, np.nan], "b": [1, 3], "c": [2, 4]}, index=ci[:-1], columns=ci + ) + tm.assert_frame_equal(result, expected) + + # periods != 1 + result = df.shift(2, axis=1) + expected = DataFrame( + {"a": [np.nan, np.nan], "b": [np.nan, np.nan], "c": [1, 3]}, + index=ci[:-1], + columns=ci, + ) + tm.assert_frame_equal(result, expected) + + def test_shift_axis1_many_periods(self): + # GH#44978 periods > len(columns) + df = DataFrame(np.random.default_rng(2).random((5, 3))) + shifted = df.shift(6, axis=1, fill_value=None) + + expected = df * np.nan + tm.assert_frame_equal(shifted, expected) + + shifted2 = df.shift(-6, axis=1, fill_value=None) + tm.assert_frame_equal(shifted2, expected) + + def test_shift_with_offsets_freq(self): + df = DataFrame({"x": [1, 2, 3]}, index=date_range("2000", periods=3)) + shifted = df.shift(freq="1MS") + expected = DataFrame( + {"x": [1, 2, 3]}, + index=date_range(start="02/01/2000", end="02/01/2000", periods=3), + ) + tm.assert_frame_equal(shifted, expected) + + def test_shift_with_iterable_basic_functionality(self): + # GH#44424 + data = {"a": [1, 2, 3], "b": [4, 5, 6]} + shifts = [0, 1, 2] + + df = DataFrame(data) + shifted = df.shift(shifts) + + expected = DataFrame( + { + "a_0": [1, 2, 3], + "b_0": [4, 5, 6], + "a_1": [np.nan, 1.0, 2.0], + "b_1": [np.nan, 4.0, 5.0], + "a_2": [np.nan, np.nan, 1.0], + "b_2": [np.nan, np.nan, 4.0], + } + ) + tm.assert_frame_equal(expected, shifted) + + def test_shift_with_iterable_series(self): + # GH#44424 + data = {"a": [1, 2, 3]} + shifts = [0, 1, 2] + + df = DataFrame(data) + s = df["a"] + tm.assert_frame_equal(s.shift(shifts), df.shift(shifts)) + + def test_shift_with_iterable_freq_and_fill_value(self): + # GH#44424 + df = DataFrame( + np.random.default_rng(2).standard_normal(5), + index=date_range("1/1/2000", periods=5, freq="h"), + ) + + tm.assert_frame_equal( + # rename because shift with an iterable leads to str column names + df.shift([1], fill_value=1).rename(columns=lambda x: int(x[0])), + df.shift(1, fill_value=1), + ) + + tm.assert_frame_equal( + df.shift([1], freq="h").rename(columns=lambda x: int(x[0])), + df.shift(1, freq="h"), + ) + + msg = ( + "Passing a 'freq' together with a 'fill_value' silently ignores the " + "fill_value" + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + df.shift([1, 2], fill_value=1, freq="h") + + def test_shift_with_iterable_check_other_arguments(self): + # GH#44424 + data = {"a": [1, 2], "b": [4, 5]} + shifts = [0, 1] + df = DataFrame(data) + + # test suffix + shifted = df[["a"]].shift(shifts, suffix="_suffix") + expected = DataFrame({"a_suffix_0": [1, 2], "a_suffix_1": [np.nan, 1.0]}) + tm.assert_frame_equal(shifted, expected) + + # check bad inputs when doing multiple shifts + msg = "If `periods` contains multiple shifts, `axis` cannot be 1." + with pytest.raises(ValueError, match=msg): + df.shift(shifts, axis=1) + + msg = "Periods must be integer, but s is ." + with pytest.raises(TypeError, match=msg): + df.shift(["s"]) + + msg = "If `periods` is an iterable, it cannot be empty." + with pytest.raises(ValueError, match=msg): + df.shift([]) + + msg = "Cannot specify `suffix` if `periods` is an int." + with pytest.raises(ValueError, match=msg): + df.shift(1, suffix="fails") + + def test_shift_axis_one_empty(self): + # GH#57301 + df = DataFrame() + result = df.shift(1, axis=1) + tm.assert_frame_equal(result, df) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_size.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_size.py new file mode 100644 index 0000000000000000000000000000000000000000..0c8b6473c85ea8e4a9749e79c8b4459afe6637d8 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_size.py @@ -0,0 +1,21 @@ +import numpy as np +import pytest + +from pandas import DataFrame + + +@pytest.mark.parametrize( + "data, index, expected", + [ + ({"col1": [1], "col2": [3]}, None, 2), + ({}, None, 0), + ({"col1": [1, np.nan], "col2": [3, 4]}, None, 4), + ({"col1": [1, 2], "col2": [3, 4]}, [["a", "b"], [1, 2]], 4), + ({"col1": [1, 2, 3, 4], "col2": [3, 4, 5, 6]}, ["x", "y", "a", "b"], 8), + ], +) +def test_size(data, index, expected): + # GH#52897 + df = DataFrame(data, index=index) + assert df.size == expected + assert isinstance(df.size, int) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_sort_index.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_sort_index.py new file mode 100644 index 0000000000000000000000000000000000000000..830561a1349ee73b68f1f95c31b0e3b8dcccb48b --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_sort_index.py @@ -0,0 +1,1028 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + CategoricalDtype, + CategoricalIndex, + DataFrame, + IntervalIndex, + MultiIndex, + RangeIndex, + Series, + Timestamp, +) +import pandas._testing as tm + + +class TestDataFrameSortIndex: + def test_sort_index_and_reconstruction_doc_example(self): + # doc example + df = DataFrame( + {"value": [1, 2, 3, 4]}, + index=MultiIndex( + levels=[["a", "b"], ["bb", "aa"]], codes=[[0, 0, 1, 1], [0, 1, 0, 1]] + ), + ) + assert df.index._is_lexsorted() + assert not df.index.is_monotonic_increasing + + # sort it + expected = DataFrame( + {"value": [2, 1, 4, 3]}, + index=MultiIndex( + levels=[["a", "b"], ["aa", "bb"]], codes=[[0, 0, 1, 1], [0, 1, 0, 1]] + ), + ) + result = df.sort_index() + assert result.index.is_monotonic_increasing + tm.assert_frame_equal(result, expected) + + # reconstruct + result = df.sort_index().copy() + result.index = result.index._sort_levels_monotonic() + assert result.index.is_monotonic_increasing + tm.assert_frame_equal(result, expected) + + def test_sort_index_non_existent_label_multiindex(self): + # GH#12261 + df = DataFrame(0, columns=[], index=MultiIndex.from_product([[], []])) + with tm.assert_produces_warning(None): + df.loc["b", "2"] = 1 + df.loc["a", "3"] = 1 + result = df.sort_index().index.is_monotonic_increasing + assert result is True + + def test_sort_index_reorder_on_ops(self): + # GH#15687 + df = DataFrame( + np.random.default_rng(2).standard_normal((8, 2)), + index=MultiIndex.from_product( + [["a", "b"], ["big", "small"], ["red", "blu"]], + names=["letter", "size", "color"], + ), + columns=["near", "far"], + ) + df = df.sort_index() + + def my_func(group): + group.index = ["newz", "newa"] + return group + + result = df.groupby(level=["letter", "size"]).apply(my_func).sort_index() + expected = MultiIndex.from_product( + [["a", "b"], ["big", "small"], ["newa", "newz"]], + names=["letter", "size", None], + ) + + tm.assert_index_equal(result.index, expected) + + def test_sort_index_nan_multiindex(self): + # GH#14784 + # incorrect sorting w.r.t. nans + tuples = [[12, 13], [np.nan, np.nan], [np.nan, 3], [1, 2]] + mi = MultiIndex.from_tuples(tuples) + + df = DataFrame(np.arange(16).reshape(4, 4), index=mi, columns=list("ABCD")) + s = Series(np.arange(4), index=mi) + + df2 = DataFrame( + { + "date": pd.DatetimeIndex( + [ + "20121002", + "20121007", + "20130130", + "20130202", + "20130305", + "20121002", + "20121207", + "20130130", + "20130202", + "20130305", + "20130202", + "20130305", + ] + ), + "user_id": [1, 1, 1, 1, 1, 3, 3, 3, 5, 5, 5, 5], + "whole_cost": [ + 1790, + np.nan, + 280, + 259, + np.nan, + 623, + 90, + 312, + np.nan, + 301, + 359, + 801, + ], + "cost": [12, 15, 10, 24, 39, 1, 0, np.nan, 45, 34, 1, 12], + } + ).set_index(["date", "user_id"]) + + # sorting frame, default nan position is last + result = df.sort_index() + expected = df.iloc[[3, 0, 2, 1], :] + tm.assert_frame_equal(result, expected) + + # sorting frame, nan position last + result = df.sort_index(na_position="last") + expected = df.iloc[[3, 0, 2, 1], :] + tm.assert_frame_equal(result, expected) + + # sorting frame, nan position first + result = df.sort_index(na_position="first") + expected = df.iloc[[1, 2, 3, 0], :] + tm.assert_frame_equal(result, expected) + + # sorting frame with removed rows + result = df2.dropna().sort_index() + expected = df2.sort_index().dropna() + tm.assert_frame_equal(result, expected) + + # sorting series, default nan position is last + result = s.sort_index() + expected = s.iloc[[3, 0, 2, 1]] + tm.assert_series_equal(result, expected) + + # sorting series, nan position last + result = s.sort_index(na_position="last") + expected = s.iloc[[3, 0, 2, 1]] + tm.assert_series_equal(result, expected) + + # sorting series, nan position first + result = s.sort_index(na_position="first") + expected = s.iloc[[1, 2, 3, 0]] + tm.assert_series_equal(result, expected) + + def test_sort_index_nan(self): + # GH#3917 + + # Test DataFrame with nan label + df = DataFrame( + {"A": [1, 2, np.nan, 1, 6, 8, 4], "B": [9, np.nan, 5, 2, 5, 4, 5]}, + index=[1, 2, 3, 4, 5, 6, np.nan], + ) + + # NaN label, ascending=True, na_position='last' + sorted_df = df.sort_index(kind="quicksort", ascending=True, na_position="last") + expected = DataFrame( + {"A": [1, 2, np.nan, 1, 6, 8, 4], "B": [9, np.nan, 5, 2, 5, 4, 5]}, + index=[1, 2, 3, 4, 5, 6, np.nan], + ) + tm.assert_frame_equal(sorted_df, expected) + + # NaN label, ascending=True, na_position='first' + sorted_df = df.sort_index(na_position="first") + expected = DataFrame( + {"A": [4, 1, 2, np.nan, 1, 6, 8], "B": [5, 9, np.nan, 5, 2, 5, 4]}, + index=[np.nan, 1, 2, 3, 4, 5, 6], + ) + tm.assert_frame_equal(sorted_df, expected) + + # NaN label, ascending=False, na_position='last' + sorted_df = df.sort_index(kind="quicksort", ascending=False) + expected = DataFrame( + {"A": [8, 6, 1, np.nan, 2, 1, 4], "B": [4, 5, 2, 5, np.nan, 9, 5]}, + index=[6, 5, 4, 3, 2, 1, np.nan], + ) + tm.assert_frame_equal(sorted_df, expected) + + # NaN label, ascending=False, na_position='first' + sorted_df = df.sort_index( + kind="quicksort", ascending=False, na_position="first" + ) + expected = DataFrame( + {"A": [4, 8, 6, 1, np.nan, 2, 1], "B": [5, 4, 5, 2, 5, np.nan, 9]}, + index=[np.nan, 6, 5, 4, 3, 2, 1], + ) + tm.assert_frame_equal(sorted_df, expected) + + def test_sort_index_multi_index(self): + # GH#25775, testing that sorting by index works with a multi-index. + df = DataFrame( + {"a": [3, 1, 2], "b": [0, 0, 0], "c": [0, 1, 2], "d": list("abc")} + ) + result = df.set_index(list("abc")).sort_index(level=list("ba")) + + expected = DataFrame( + {"a": [1, 2, 3], "b": [0, 0, 0], "c": [1, 2, 0], "d": list("bca")} + ) + expected = expected.set_index(list("abc")) + + tm.assert_frame_equal(result, expected) + + def test_sort_index_inplace(self): + frame = DataFrame( + np.random.default_rng(2).standard_normal((4, 4)), + index=[1, 2, 3, 4], + columns=["A", "B", "C", "D"], + ) + + # axis=0 + unordered = frame.loc[[3, 2, 4, 1]] + a_values = unordered["A"] + df = unordered.copy() + return_value = df.sort_index(inplace=True) + assert return_value is None + expected = frame + tm.assert_frame_equal(df, expected) + # GH 44153 related + # Used to be a_id != id(df["A"]), but flaky in the CI + assert a_values is not df["A"] + + df = unordered.copy() + return_value = df.sort_index(ascending=False, inplace=True) + assert return_value is None + expected = frame[::-1] + tm.assert_frame_equal(df, expected) + + # axis=1 + unordered = frame.loc[:, ["D", "B", "C", "A"]] + df = unordered.copy() + return_value = df.sort_index(axis=1, inplace=True) + assert return_value is None + expected = frame + tm.assert_frame_equal(df, expected) + + df = unordered.copy() + return_value = df.sort_index(axis=1, ascending=False, inplace=True) + assert return_value is None + expected = frame.iloc[:, ::-1] + tm.assert_frame_equal(df, expected) + + def test_sort_index_different_sortorder(self): + A = np.arange(20).repeat(5) + B = np.tile(np.arange(5), 20) + + indexer = np.random.default_rng(2).permutation(100) + A = A.take(indexer) + B = B.take(indexer) + + df = DataFrame( + {"A": A, "B": B, "C": np.random.default_rng(2).standard_normal(100)} + ) + + ex_indexer = np.lexsort((df.B.max() - df.B, df.A)) + expected = df.take(ex_indexer) + + # test with multiindex, too + idf = df.set_index(["A", "B"]) + + result = idf.sort_index(ascending=[1, 0]) + expected = idf.take(ex_indexer) + tm.assert_frame_equal(result, expected) + + # also, Series! + result = idf["C"].sort_index(ascending=[1, 0]) + tm.assert_series_equal(result, expected["C"]) + + def test_sort_index_level(self): + mi = MultiIndex.from_tuples([[1, 1, 3], [1, 1, 1]], names=list("ABC")) + df = DataFrame([[1, 2], [3, 4]], mi) + + result = df.sort_index(level="A", sort_remaining=False) + expected = df + tm.assert_frame_equal(result, expected) + + result = df.sort_index(level=["A", "B"], sort_remaining=False) + expected = df + tm.assert_frame_equal(result, expected) + + # Error thrown by sort_index when + # first index is sorted last (GH#26053) + result = df.sort_index(level=["C", "B", "A"]) + expected = df.iloc[[1, 0]] + tm.assert_frame_equal(result, expected) + + result = df.sort_index(level=["B", "C", "A"]) + expected = df.iloc[[1, 0]] + tm.assert_frame_equal(result, expected) + + result = df.sort_index(level=["C", "A"]) + expected = df.iloc[[1, 0]] + tm.assert_frame_equal(result, expected) + + def test_sort_index_categorical_index(self): + df = DataFrame( + { + "A": np.arange(6, dtype="int64"), + "B": Series(list("aabbca")).astype(CategoricalDtype(list("cab"))), + } + ).set_index("B") + + result = df.sort_index() + expected = df.iloc[[4, 0, 1, 5, 2, 3]] + tm.assert_frame_equal(result, expected) + + result = df.sort_index(ascending=False) + expected = df.iloc[[2, 3, 0, 1, 5, 4]] + tm.assert_frame_equal(result, expected) + + def test_sort_index(self): + # GH#13496 + + frame = DataFrame( + np.arange(16).reshape(4, 4), + index=[1, 2, 3, 4], + columns=["A", "B", "C", "D"], + ) + + # axis=0 : sort rows by index labels + unordered = frame.loc[[3, 2, 4, 1]] + result = unordered.sort_index(axis=0) + expected = frame + tm.assert_frame_equal(result, expected) + + result = unordered.sort_index(ascending=False) + expected = frame[::-1] + tm.assert_frame_equal(result, expected) + + # axis=1 : sort columns by column names + unordered = frame.iloc[:, [2, 1, 3, 0]] + result = unordered.sort_index(axis=1) + tm.assert_frame_equal(result, frame) + + result = unordered.sort_index(axis=1, ascending=False) + expected = frame.iloc[:, ::-1] + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("level", ["A", 0]) # GH#21052 + def test_sort_index_multiindex(self, level): + # GH#13496 + + # sort rows by specified level of multi-index + mi = MultiIndex.from_tuples( + [[2, 1, 3], [2, 1, 2], [1, 1, 1]], names=list("ABC") + ) + df = DataFrame([[1, 2], [3, 4], [5, 6]], index=mi) + + expected_mi = MultiIndex.from_tuples( + [[1, 1, 1], [2, 1, 2], [2, 1, 3]], names=list("ABC") + ) + expected = DataFrame([[5, 6], [3, 4], [1, 2]], index=expected_mi) + result = df.sort_index(level=level) + tm.assert_frame_equal(result, expected) + + # sort_remaining=False + expected_mi = MultiIndex.from_tuples( + [[1, 1, 1], [2, 1, 3], [2, 1, 2]], names=list("ABC") + ) + expected = DataFrame([[5, 6], [1, 2], [3, 4]], index=expected_mi) + result = df.sort_index(level=level, sort_remaining=False) + tm.assert_frame_equal(result, expected) + + def test_sort_index_intervalindex(self): + # this is a de-facto sort via unstack + # confirming that we sort in the order of the bins + y = Series(np.random.default_rng(2).standard_normal(100)) + x1 = Series(np.sign(np.random.default_rng(2).standard_normal(100))) + x2 = pd.cut( + Series(np.random.default_rng(2).standard_normal(100)), + bins=[-3, -0.5, 0, 0.5, 3], + ) + model = pd.concat([y, x1, x2], axis=1, keys=["Y", "X1", "X2"]) + + result = model.groupby(["X1", "X2"], observed=True).mean().unstack() + expected = IntervalIndex.from_tuples( + [(-3.0, -0.5), (-0.5, 0.0), (0.0, 0.5), (0.5, 3.0)], closed="right" + ) + result = result.columns.levels[1].categories + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("inplace", [True, False]) + @pytest.mark.parametrize( + "original_dict, sorted_dict, ascending, ignore_index, output_index", + [ + ({"A": [1, 2, 3]}, {"A": [2, 3, 1]}, False, True, [0, 1, 2]), + ({"A": [1, 2, 3]}, {"A": [1, 3, 2]}, True, True, [0, 1, 2]), + ({"A": [1, 2, 3]}, {"A": [2, 3, 1]}, False, False, [5, 3, 2]), + ({"A": [1, 2, 3]}, {"A": [1, 3, 2]}, True, False, [2, 3, 5]), + ], + ) + def test_sort_index_ignore_index( + self, inplace, original_dict, sorted_dict, ascending, ignore_index, output_index + ): + # GH 30114 + original_index = [2, 5, 3] + df = DataFrame(original_dict, index=original_index) + expected_df = DataFrame(sorted_dict, index=output_index) + kwargs = { + "ascending": ascending, + "ignore_index": ignore_index, + "inplace": inplace, + } + + if inplace: + result_df = df.copy() + result_df.sort_index(**kwargs) + else: + result_df = df.sort_index(**kwargs) + + tm.assert_frame_equal(result_df, expected_df) + tm.assert_frame_equal(df, DataFrame(original_dict, index=original_index)) + + @pytest.mark.parametrize("inplace", [True, False]) + @pytest.mark.parametrize("ignore_index", [True, False]) + def test_respect_ignore_index(self, inplace, ignore_index): + # GH 43591 + df = DataFrame({"a": [1, 2, 3]}, index=RangeIndex(4, -1, -2)) + result = df.sort_index( + ascending=False, ignore_index=ignore_index, inplace=inplace + ) + + if inplace: + result = df + if ignore_index: + expected = DataFrame({"a": [1, 2, 3]}) + else: + expected = DataFrame({"a": [1, 2, 3]}, index=RangeIndex(4, -1, -2)) + + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("inplace", [True, False]) + @pytest.mark.parametrize( + "original_dict, sorted_dict, ascending, ignore_index, output_index", + [ + ( + {"M1": [1, 2], "M2": [3, 4]}, + {"M1": [1, 2], "M2": [3, 4]}, + True, + True, + [0, 1], + ), + ( + {"M1": [1, 2], "M2": [3, 4]}, + {"M1": [2, 1], "M2": [4, 3]}, + False, + True, + [0, 1], + ), + ( + {"M1": [1, 2], "M2": [3, 4]}, + {"M1": [1, 2], "M2": [3, 4]}, + True, + False, + MultiIndex.from_tuples([(2, 1), (3, 4)], names=list("AB")), + ), + ( + {"M1": [1, 2], "M2": [3, 4]}, + {"M1": [2, 1], "M2": [4, 3]}, + False, + False, + MultiIndex.from_tuples([(3, 4), (2, 1)], names=list("AB")), + ), + ], + ) + def test_sort_index_ignore_index_multi_index( + self, inplace, original_dict, sorted_dict, ascending, ignore_index, output_index + ): + # GH 30114, this is to test ignore_index on MultiIndex of index + mi = MultiIndex.from_tuples([(2, 1), (3, 4)], names=list("AB")) + df = DataFrame(original_dict, index=mi) + expected_df = DataFrame(sorted_dict, index=output_index) + + kwargs = { + "ascending": ascending, + "ignore_index": ignore_index, + "inplace": inplace, + } + + if inplace: + result_df = df.copy() + result_df.sort_index(**kwargs) + else: + result_df = df.sort_index(**kwargs) + + tm.assert_frame_equal(result_df, expected_df) + tm.assert_frame_equal(df, DataFrame(original_dict, index=mi)) + + def test_sort_index_categorical_multiindex(self): + # GH#15058 + df = DataFrame( + { + "a": range(6), + "l1": pd.Categorical( + ["a", "a", "b", "b", "c", "c"], + categories=["c", "a", "b"], + ordered=True, + ), + "l2": [0, 1, 0, 1, 0, 1], + } + ) + result = df.set_index(["l1", "l2"]).sort_index() + expected = DataFrame( + [4, 5, 0, 1, 2, 3], + columns=["a"], + index=MultiIndex( + levels=[ + CategoricalIndex( + ["c", "a", "b"], + categories=["c", "a", "b"], + ordered=True, + name="l1", + dtype="category", + ), + [0, 1], + ], + codes=[[0, 0, 1, 1, 2, 2], [0, 1, 0, 1, 0, 1]], + names=["l1", "l2"], + ), + ) + tm.assert_frame_equal(result, expected) + + def test_sort_index_and_reconstruction(self): + # GH#15622 + # lexsortedness should be identical + # across MultiIndex construction methods + + df = DataFrame([[1, 1], [2, 2]], index=list("ab")) + expected = DataFrame( + [[1, 1], [2, 2], [1, 1], [2, 2]], + index=MultiIndex.from_tuples( + [(0.5, "a"), (0.5, "b"), (0.8, "a"), (0.8, "b")] + ), + ) + assert expected.index._is_lexsorted() + + result = DataFrame( + [[1, 1], [2, 2], [1, 1], [2, 2]], + index=MultiIndex.from_product([[0.5, 0.8], list("ab")]), + ) + result = result.sort_index() + assert result.index.is_monotonic_increasing + + tm.assert_frame_equal(result, expected) + + result = DataFrame( + [[1, 1], [2, 2], [1, 1], [2, 2]], + index=MultiIndex( + levels=[[0.5, 0.8], ["a", "b"]], codes=[[0, 0, 1, 1], [0, 1, 0, 1]] + ), + ) + result = result.sort_index() + assert result.index._is_lexsorted() + + tm.assert_frame_equal(result, expected) + + concatted = pd.concat([df, df], keys=[0.8, 0.5]) + result = concatted.sort_index() + + assert result.index.is_monotonic_increasing + + tm.assert_frame_equal(result, expected) + + # GH#14015 + df = DataFrame( + [[1, 2], [6, 7]], + columns=MultiIndex.from_tuples( + [(0, "20160811 12:00:00"), (0, "20160809 12:00:00")], + names=["l1", "Date"], + ), + ) + + df.columns = df.columns.set_levels( + pd.to_datetime(df.columns.levels[1]), level=1 + ) + assert not df.columns.is_monotonic_increasing + result = df.sort_index(axis=1) + assert result.columns.is_monotonic_increasing + result = df.sort_index(axis=1, level=1) + assert result.columns.is_monotonic_increasing + + # TODO: better name, de-duplicate with test_sort_index_level above + def test_sort_index_level2(self, multiindex_dataframe_random_data): + frame = multiindex_dataframe_random_data + + df = frame.copy() + df.index = np.arange(len(df)) + + # axis=1 + + # series + a_sorted = frame["A"].sort_index(level=0) + + # preserve names + assert a_sorted.index.names == frame.index.names + + # inplace + rs = frame.copy() + return_value = rs.sort_index(level=0, inplace=True) + assert return_value is None + tm.assert_frame_equal(rs, frame.sort_index(level=0)) + + def test_sort_index_level_large_cardinality(self): + # GH#2684 (int64) + index = MultiIndex.from_arrays([np.arange(4000)] * 3) + df = DataFrame( + np.random.default_rng(2).standard_normal(4000).astype("int64"), index=index + ) + + # it works! + result = df.sort_index(level=0) + assert result.index._lexsort_depth == 3 + + # GH#2684 (int32) + index = MultiIndex.from_arrays([np.arange(4000)] * 3) + df = DataFrame( + np.random.default_rng(2).standard_normal(4000).astype("int32"), index=index + ) + + # it works! + result = df.sort_index(level=0) + assert (result.dtypes.values == df.dtypes.values).all() + assert result.index._lexsort_depth == 3 + + def test_sort_index_level_by_name(self, multiindex_dataframe_random_data): + frame = multiindex_dataframe_random_data + + frame.index.names = ["first", "second"] + result = frame.sort_index(level="second") + expected = frame.sort_index(level=1) + tm.assert_frame_equal(result, expected) + + def test_sort_index_level_mixed(self, multiindex_dataframe_random_data): + frame = multiindex_dataframe_random_data + + sorted_before = frame.sort_index(level=1) + + df = frame.copy() + df["foo"] = "bar" + sorted_after = df.sort_index(level=1) + tm.assert_frame_equal(sorted_before, sorted_after.drop(["foo"], axis=1)) + + dft = frame.T + sorted_before = dft.sort_index(level=1, axis=1) + dft["foo", "three"] = "bar" + + sorted_after = dft.sort_index(level=1, axis=1) + tm.assert_frame_equal( + sorted_before.drop([("foo", "three")], axis=1), + sorted_after.drop([("foo", "three")], axis=1), + ) + + def test_sort_index_preserve_levels(self, multiindex_dataframe_random_data): + frame = multiindex_dataframe_random_data + + result = frame.sort_index() + assert result.index.names == frame.index.names + + @pytest.mark.parametrize( + "gen,extra", + [ + ([1.0, 3.0, 2.0, 5.0], 4.0), + ([1, 3, 2, 5], 4), + ( + [ + Timestamp("20130101"), + Timestamp("20130103"), + Timestamp("20130102"), + Timestamp("20130105"), + ], + Timestamp("20130104"), + ), + (["1one", "3one", "2one", "5one"], "4one"), + ], + ) + def test_sort_index_multilevel_repr_8017(self, gen, extra): + data = np.random.default_rng(2).standard_normal((3, 4)) + + columns = MultiIndex.from_tuples([("red", i) for i in gen]) + df = DataFrame(data, index=list("def"), columns=columns) + df2 = pd.concat( + [ + df, + DataFrame( + "world", + index=list("def"), + columns=MultiIndex.from_tuples([("red", extra)]), + ), + ], + axis=1, + ) + + # check that the repr is good + # make sure that we have a correct sparsified repr + # e.g. only 1 header of read + assert str(df2).splitlines()[0].split() == ["red"] + + # GH 8017 + # sorting fails after columns added + + # construct single-dtype then sort + result = df.copy().sort_index(axis=1) + expected = df.iloc[:, [0, 2, 1, 3]] + tm.assert_frame_equal(result, expected) + + result = df2.sort_index(axis=1) + expected = df2.iloc[:, [0, 2, 1, 4, 3]] + tm.assert_frame_equal(result, expected) + + # setitem then sort + result = df.copy() + result[("red", extra)] = "world" + + result = result.sort_index(axis=1) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "categories", + [ + pytest.param(["a", "b", "c"], id="str"), + pytest.param( + [pd.Interval(0, 1), pd.Interval(1, 2), pd.Interval(2, 3)], + id="pd.Interval", + ), + ], + ) + def test_sort_index_with_categories(self, categories): + # GH#23452 + df = DataFrame( + {"foo": range(len(categories))}, + index=CategoricalIndex( + data=categories, categories=categories, ordered=True + ), + ) + df.index = df.index.reorder_categories(df.index.categories[::-1]) + result = df.sort_index() + expected = DataFrame( + {"foo": reversed(range(len(categories)))}, + index=CategoricalIndex( + data=categories[::-1], categories=categories[::-1], ordered=True + ), + ) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "ascending", + [ + None, + [True, None], + [False, "True"], + ], + ) + def test_sort_index_ascending_bad_value_raises(self, ascending): + # GH 39434 + df = DataFrame(np.arange(64)) + length = len(df.index) + df.index = [(i - length / 2) % length for i in range(length)] + match = 'For argument "ascending" expected type bool' + with pytest.raises(ValueError, match=match): + df.sort_index(axis=0, ascending=ascending, na_position="first") + + def test_sort_index_use_inf_as_na(self): + # GH 29687 + expected = DataFrame( + {"col1": [1, 2, 3], "col2": [3, 4, 5]}, + index=pd.date_range("2020", periods=3), + ) + msg = "use_inf_as_na option is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + with pd.option_context("mode.use_inf_as_na", True): + result = expected.sort_index() + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "ascending", + [(True, False), [True, False]], + ) + def test_sort_index_ascending_tuple(self, ascending): + df = DataFrame( + { + "legs": [4, 2, 4, 2, 2], + }, + index=MultiIndex.from_tuples( + [ + ("mammal", "dog"), + ("bird", "duck"), + ("mammal", "horse"), + ("bird", "penguin"), + ("mammal", "kangaroo"), + ], + names=["class", "animal"], + ), + ) + + # parameter `ascending`` is a tuple + result = df.sort_index(level=(0, 1), ascending=ascending) + + expected = DataFrame( + { + "legs": [2, 2, 2, 4, 4], + }, + index=MultiIndex.from_tuples( + [ + ("bird", "penguin"), + ("bird", "duck"), + ("mammal", "kangaroo"), + ("mammal", "horse"), + ("mammal", "dog"), + ], + names=["class", "animal"], + ), + ) + + tm.assert_frame_equal(result, expected) + + +class TestDataFrameSortIndexKey: + def test_sort_multi_index_key(self): + # GH 25775, testing that sorting by index works with a multi-index. + df = DataFrame( + {"a": [3, 1, 2], "b": [0, 0, 0], "c": [0, 1, 2], "d": list("abc")} + ).set_index(list("abc")) + + result = df.sort_index(level=list("ac"), key=lambda x: x) + + expected = DataFrame( + {"a": [1, 2, 3], "b": [0, 0, 0], "c": [1, 2, 0], "d": list("bca")} + ).set_index(list("abc")) + tm.assert_frame_equal(result, expected) + + result = df.sort_index(level=list("ac"), key=lambda x: -x) + expected = DataFrame( + {"a": [3, 2, 1], "b": [0, 0, 0], "c": [0, 2, 1], "d": list("acb")} + ).set_index(list("abc")) + + tm.assert_frame_equal(result, expected) + + def test_sort_index_key(self): # issue 27237 + df = DataFrame(np.arange(6, dtype="int64"), index=list("aaBBca")) + + result = df.sort_index() + expected = df.iloc[[2, 3, 0, 1, 5, 4]] + tm.assert_frame_equal(result, expected) + + result = df.sort_index(key=lambda x: x.str.lower()) + expected = df.iloc[[0, 1, 5, 2, 3, 4]] + tm.assert_frame_equal(result, expected) + + result = df.sort_index(key=lambda x: x.str.lower(), ascending=False) + expected = df.iloc[[4, 2, 3, 0, 1, 5]] + tm.assert_frame_equal(result, expected) + + def test_sort_index_key_int(self): + df = DataFrame(np.arange(6, dtype="int64"), index=np.arange(6, dtype="int64")) + + result = df.sort_index() + tm.assert_frame_equal(result, df) + + result = df.sort_index(key=lambda x: -x) + expected = df.sort_index(ascending=False) + tm.assert_frame_equal(result, expected) + + result = df.sort_index(key=lambda x: 2 * x) + tm.assert_frame_equal(result, df) + + def test_sort_multi_index_key_str(self): + # GH 25775, testing that sorting by index works with a multi-index. + df = DataFrame( + {"a": ["B", "a", "C"], "b": [0, 1, 0], "c": list("abc"), "d": [0, 1, 2]} + ).set_index(list("abc")) + + result = df.sort_index(level="a", key=lambda x: x.str.lower()) + + expected = DataFrame( + {"a": ["a", "B", "C"], "b": [1, 0, 0], "c": list("bac"), "d": [1, 0, 2]} + ).set_index(list("abc")) + tm.assert_frame_equal(result, expected) + + result = df.sort_index( + level=list("abc"), # can refer to names + key=lambda x: x.str.lower() if x.name in ["a", "c"] else -x, + ) + + expected = DataFrame( + {"a": ["a", "B", "C"], "b": [1, 0, 0], "c": list("bac"), "d": [1, 0, 2]} + ).set_index(list("abc")) + tm.assert_frame_equal(result, expected) + + def test_changes_length_raises(self): + df = DataFrame({"A": [1, 2, 3]}) + with pytest.raises(ValueError, match="change the shape"): + df.sort_index(key=lambda x: x[:1]) + + def test_sort_index_multiindex_sparse_column(self): + # GH 29735, testing that sort_index on a multiindexed frame with sparse + # columns fills with 0. + expected = DataFrame( + { + i: pd.array([0.0, 0.0, 0.0, 0.0], dtype=pd.SparseDtype("float64", 0.0)) + for i in range(4) + }, + index=MultiIndex.from_product([[1, 2], [1, 2]]), + ) + + result = expected.sort_index(level=0) + + tm.assert_frame_equal(result, expected) + + def test_sort_index_na_position(self): + # GH#51612 + df = DataFrame([1, 2], index=MultiIndex.from_tuples([(1, 1), (1, pd.NA)])) + expected = df.copy() + result = df.sort_index(level=[0, 1], na_position="last") + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("ascending", [True, False]) + def test_sort_index_multiindex_sort_remaining(self, ascending): + # GH #24247 + df = DataFrame( + {"A": [1, 2, 3, 4, 5], "B": [10, 20, 30, 40, 50]}, + index=MultiIndex.from_tuples( + [("a", "x"), ("a", "y"), ("b", "x"), ("b", "y"), ("c", "x")] + ), + ) + + result = df.sort_index(level=1, sort_remaining=False, ascending=ascending) + + if ascending: + expected = DataFrame( + {"A": [1, 3, 5, 2, 4], "B": [10, 30, 50, 20, 40]}, + index=MultiIndex.from_tuples( + [("a", "x"), ("b", "x"), ("c", "x"), ("a", "y"), ("b", "y")] + ), + ) + else: + expected = DataFrame( + {"A": [2, 4, 1, 3, 5], "B": [20, 40, 10, 30, 50]}, + index=MultiIndex.from_tuples( + [("a", "y"), ("b", "y"), ("a", "x"), ("b", "x"), ("c", "x")] + ), + ) + + tm.assert_frame_equal(result, expected) + + +def test_sort_index_with_sliced_multiindex(): + # GH 55379 + mi = MultiIndex.from_tuples( + [ + ("a", "10"), + ("a", "18"), + ("a", "25"), + ("b", "16"), + ("b", "26"), + ("a", "45"), + ("b", "28"), + ("a", "5"), + ("a", "50"), + ("a", "51"), + ("b", "4"), + ], + names=["group", "str"], + ) + + df = DataFrame({"x": range(len(mi))}, index=mi) + result = df.iloc[0:6].sort_index() + + expected = DataFrame( + {"x": [0, 1, 2, 5, 3, 4]}, + index=MultiIndex.from_tuples( + [ + ("a", "10"), + ("a", "18"), + ("a", "25"), + ("a", "45"), + ("b", "16"), + ("b", "26"), + ], + names=["group", "str"], + ), + ) + tm.assert_frame_equal(result, expected) + + +def test_axis_columns_ignore_index(): + # GH 56478 + df = DataFrame([[1, 2]], columns=["d", "c"]) + result = df.sort_index(axis="columns", ignore_index=True) + expected = DataFrame([[2, 1]]) + tm.assert_frame_equal(result, expected) + + +def test_sort_index_stable_sort(): + # GH 57151 + df = DataFrame( + data=[ + (Timestamp("2024-01-30 13:00:00"), 13.0), + (Timestamp("2024-01-30 13:00:00"), 13.1), + (Timestamp("2024-01-30 12:00:00"), 12.0), + (Timestamp("2024-01-30 12:00:00"), 12.1), + ], + columns=["dt", "value"], + ).set_index(["dt"]) + result = df.sort_index(level="dt", kind="stable") + expected = DataFrame( + data=[ + (Timestamp("2024-01-30 12:00:00"), 12.0), + (Timestamp("2024-01-30 12:00:00"), 12.1), + (Timestamp("2024-01-30 13:00:00"), 13.0), + (Timestamp("2024-01-30 13:00:00"), 13.1), + ], + columns=["dt", "value"], + ).set_index(["dt"]) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_sort_values.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_sort_values.py new file mode 100644 index 0000000000000000000000000000000000000000..f2f02058a534e782a1fe1bd302512897218c1a1d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_sort_values.py @@ -0,0 +1,940 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + Categorical, + DataFrame, + NaT, + Timestamp, + date_range, +) +import pandas._testing as tm +from pandas.util.version import Version + + +class TestDataFrameSortValues: + @pytest.mark.parametrize("dtype", [np.uint8, bool]) + def test_sort_values_sparse_no_warning(self, dtype): + # GH#45618 + ser = pd.Series(Categorical(["a", "b", "a"], categories=["a", "b", "c"])) + df = pd.get_dummies(ser, dtype=dtype, sparse=True) + + with tm.assert_produces_warning(None): + # No warnings about constructing Index from SparseArray + df.sort_values(by=df.columns.tolist()) + + def test_sort_values(self): + frame = DataFrame( + [[1, 1, 2], [3, 1, 0], [4, 5, 6]], index=[1, 2, 3], columns=list("ABC") + ) + + # by column (axis=0) + sorted_df = frame.sort_values(by="A") + indexer = frame["A"].argsort().values + expected = frame.loc[frame.index[indexer]] + tm.assert_frame_equal(sorted_df, expected) + + sorted_df = frame.sort_values(by="A", ascending=False) + indexer = indexer[::-1] + expected = frame.loc[frame.index[indexer]] + tm.assert_frame_equal(sorted_df, expected) + + sorted_df = frame.sort_values(by="A", ascending=False) + tm.assert_frame_equal(sorted_df, expected) + + # GH4839 + sorted_df = frame.sort_values(by=["A"], ascending=[False]) + tm.assert_frame_equal(sorted_df, expected) + + # multiple bys + sorted_df = frame.sort_values(by=["B", "C"]) + expected = frame.loc[[2, 1, 3]] + tm.assert_frame_equal(sorted_df, expected) + + sorted_df = frame.sort_values(by=["B", "C"], ascending=False) + tm.assert_frame_equal(sorted_df, expected[::-1]) + + sorted_df = frame.sort_values(by=["B", "A"], ascending=[True, False]) + tm.assert_frame_equal(sorted_df, expected) + + msg = "No axis named 2 for object type DataFrame" + with pytest.raises(ValueError, match=msg): + frame.sort_values(by=["A", "B"], axis=2, inplace=True) + + # by row (axis=1): GH#10806 + sorted_df = frame.sort_values(by=3, axis=1) + expected = frame + tm.assert_frame_equal(sorted_df, expected) + + sorted_df = frame.sort_values(by=3, axis=1, ascending=False) + expected = frame.reindex(columns=["C", "B", "A"]) + tm.assert_frame_equal(sorted_df, expected) + + sorted_df = frame.sort_values(by=[1, 2], axis="columns") + expected = frame.reindex(columns=["B", "A", "C"]) + tm.assert_frame_equal(sorted_df, expected) + + sorted_df = frame.sort_values(by=[1, 3], axis=1, ascending=[True, False]) + tm.assert_frame_equal(sorted_df, expected) + + sorted_df = frame.sort_values(by=[1, 3], axis=1, ascending=False) + expected = frame.reindex(columns=["C", "B", "A"]) + tm.assert_frame_equal(sorted_df, expected) + + msg = r"Length of ascending \(5\) != length of by \(2\)" + with pytest.raises(ValueError, match=msg): + frame.sort_values(by=["A", "B"], axis=0, ascending=[True] * 5) + + def test_sort_values_by_empty_list(self): + # https://github.com/pandas-dev/pandas/issues/40258 + expected = DataFrame({"a": [1, 4, 2, 5, 3, 6]}) + result = expected.sort_values(by=[]) + tm.assert_frame_equal(result, expected) + assert result is not expected + + def test_sort_values_inplace(self): + frame = DataFrame( + np.random.default_rng(2).standard_normal((4, 4)), + index=[1, 2, 3, 4], + columns=["A", "B", "C", "D"], + ) + + sorted_df = frame.copy() + return_value = sorted_df.sort_values(by="A", inplace=True) + assert return_value is None + expected = frame.sort_values(by="A") + tm.assert_frame_equal(sorted_df, expected) + + sorted_df = frame.copy() + return_value = sorted_df.sort_values(by=1, axis=1, inplace=True) + assert return_value is None + expected = frame.sort_values(by=1, axis=1) + tm.assert_frame_equal(sorted_df, expected) + + sorted_df = frame.copy() + return_value = sorted_df.sort_values(by="A", ascending=False, inplace=True) + assert return_value is None + expected = frame.sort_values(by="A", ascending=False) + tm.assert_frame_equal(sorted_df, expected) + + sorted_df = frame.copy() + return_value = sorted_df.sort_values( + by=["A", "B"], ascending=False, inplace=True + ) + assert return_value is None + expected = frame.sort_values(by=["A", "B"], ascending=False) + tm.assert_frame_equal(sorted_df, expected) + + def test_sort_values_multicolumn(self): + A = np.arange(5).repeat(20) + B = np.tile(np.arange(5), 20) + np.random.default_rng(2).shuffle(A) + np.random.default_rng(2).shuffle(B) + frame = DataFrame( + {"A": A, "B": B, "C": np.random.default_rng(2).standard_normal(100)} + ) + + result = frame.sort_values(by=["A", "B"]) + indexer = np.lexsort((frame["B"], frame["A"])) + expected = frame.take(indexer) + tm.assert_frame_equal(result, expected) + + result = frame.sort_values(by=["A", "B"], ascending=False) + indexer = np.lexsort( + (frame["B"].rank(ascending=False), frame["A"].rank(ascending=False)) + ) + expected = frame.take(indexer) + tm.assert_frame_equal(result, expected) + + result = frame.sort_values(by=["B", "A"]) + indexer = np.lexsort((frame["A"], frame["B"])) + expected = frame.take(indexer) + tm.assert_frame_equal(result, expected) + + def test_sort_values_multicolumn_uint64(self): + # GH#9918 + # uint64 multicolumn sort + + df = DataFrame( + { + "a": pd.Series([18446637057563306014, 1162265347240853609]), + "b": pd.Series([1, 2]), + } + ) + df["a"] = df["a"].astype(np.uint64) + result = df.sort_values(["a", "b"]) + + expected = DataFrame( + { + "a": pd.Series([18446637057563306014, 1162265347240853609]), + "b": pd.Series([1, 2]), + }, + index=pd.Index([1, 0]), + ) + + tm.assert_frame_equal(result, expected) + + def test_sort_values_nan(self): + # GH#3917 + df = DataFrame( + {"A": [1, 2, np.nan, 1, 6, 8, 4], "B": [9, np.nan, 5, 2, 5, 4, 5]} + ) + + # sort one column only + expected = DataFrame( + {"A": [np.nan, 1, 1, 2, 4, 6, 8], "B": [5, 9, 2, np.nan, 5, 5, 4]}, + index=[2, 0, 3, 1, 6, 4, 5], + ) + sorted_df = df.sort_values(["A"], na_position="first") + tm.assert_frame_equal(sorted_df, expected) + + expected = DataFrame( + {"A": [np.nan, 8, 6, 4, 2, 1, 1], "B": [5, 4, 5, 5, np.nan, 9, 2]}, + index=[2, 5, 4, 6, 1, 0, 3], + ) + sorted_df = df.sort_values(["A"], na_position="first", ascending=False) + tm.assert_frame_equal(sorted_df, expected) + + expected = df.reindex(columns=["B", "A"]) + sorted_df = df.sort_values(by=1, axis=1, na_position="first") + tm.assert_frame_equal(sorted_df, expected) + + # na_position='last', order + expected = DataFrame( + {"A": [1, 1, 2, 4, 6, 8, np.nan], "B": [2, 9, np.nan, 5, 5, 4, 5]}, + index=[3, 0, 1, 6, 4, 5, 2], + ) + sorted_df = df.sort_values(["A", "B"]) + tm.assert_frame_equal(sorted_df, expected) + + # na_position='first', order + expected = DataFrame( + {"A": [np.nan, 1, 1, 2, 4, 6, 8], "B": [5, 2, 9, np.nan, 5, 5, 4]}, + index=[2, 3, 0, 1, 6, 4, 5], + ) + sorted_df = df.sort_values(["A", "B"], na_position="first") + tm.assert_frame_equal(sorted_df, expected) + + # na_position='first', not order + expected = DataFrame( + {"A": [np.nan, 1, 1, 2, 4, 6, 8], "B": [5, 9, 2, np.nan, 5, 5, 4]}, + index=[2, 0, 3, 1, 6, 4, 5], + ) + sorted_df = df.sort_values(["A", "B"], ascending=[1, 0], na_position="first") + tm.assert_frame_equal(sorted_df, expected) + + # na_position='last', not order + expected = DataFrame( + {"A": [8, 6, 4, 2, 1, 1, np.nan], "B": [4, 5, 5, np.nan, 2, 9, 5]}, + index=[5, 4, 6, 1, 3, 0, 2], + ) + sorted_df = df.sort_values(["A", "B"], ascending=[0, 1], na_position="last") + tm.assert_frame_equal(sorted_df, expected) + + def test_sort_values_stable_descending_sort(self): + # GH#6399 + df = DataFrame( + [[2, "first"], [2, "second"], [1, "a"], [1, "b"]], + columns=["sort_col", "order"], + ) + sorted_df = df.sort_values(by="sort_col", kind="mergesort", ascending=False) + tm.assert_frame_equal(df, sorted_df) + + @pytest.mark.parametrize( + "expected_idx_non_na, ascending", + [ + [ + [3, 4, 5, 0, 1, 8, 6, 9, 7, 10, 13, 14], + [True, True], + ], + [ + [0, 3, 4, 5, 1, 8, 6, 7, 10, 13, 14, 9], + [True, False], + ], + [ + [9, 7, 10, 13, 14, 6, 8, 1, 3, 4, 5, 0], + [False, True], + ], + [ + [7, 10, 13, 14, 9, 6, 8, 1, 0, 3, 4, 5], + [False, False], + ], + ], + ) + @pytest.mark.parametrize("na_position", ["first", "last"]) + def test_sort_values_stable_multicolumn_sort( + self, expected_idx_non_na, ascending, na_position + ): + # GH#38426 Clarify sort_values with mult. columns / labels is stable + df = DataFrame( + { + "A": [1, 2, np.nan, 1, 1, 1, 6, 8, 4, 8, 8, np.nan, np.nan, 8, 8], + "B": [9, np.nan, 5, 2, 2, 2, 5, 4, 5, 3, 4, np.nan, np.nan, 4, 4], + } + ) + # All rows with NaN in col "B" only have unique values in "A", therefore, + # only the rows with NaNs in "A" have to be treated individually: + expected_idx = ( + [11, 12, 2] + expected_idx_non_na + if na_position == "first" + else expected_idx_non_na + [2, 11, 12] + ) + expected = df.take(expected_idx) + sorted_df = df.sort_values( + ["A", "B"], ascending=ascending, na_position=na_position + ) + tm.assert_frame_equal(sorted_df, expected) + + def test_sort_values_stable_categorial(self): + # GH#16793 + df = DataFrame({"x": Categorical(np.repeat([1, 2, 3, 4], 5), ordered=True)}) + expected = df.copy() + sorted_df = df.sort_values("x", kind="mergesort") + tm.assert_frame_equal(sorted_df, expected) + + def test_sort_values_datetimes(self): + # GH#3461, argsort / lexsort differences for a datetime column + df = DataFrame( + ["a", "a", "a", "b", "c", "d", "e", "f", "g"], + columns=["A"], + index=date_range("20130101", periods=9), + ) + dts = [ + Timestamp(x) + for x in [ + "2004-02-11", + "2004-01-21", + "2004-01-26", + "2005-09-20", + "2010-10-04", + "2009-05-12", + "2008-11-12", + "2010-09-28", + "2010-09-28", + ] + ] + df["B"] = dts[::2] + dts[1::2] + df["C"] = 2.0 + df["A1"] = 3.0 + + df1 = df.sort_values(by="A") + df2 = df.sort_values(by=["A"]) + tm.assert_frame_equal(df1, df2) + + df1 = df.sort_values(by="B") + df2 = df.sort_values(by=["B"]) + tm.assert_frame_equal(df1, df2) + + df1 = df.sort_values(by="B") + + df2 = df.sort_values(by=["C", "B"]) + tm.assert_frame_equal(df1, df2) + + def test_sort_values_frame_column_inplace_sort_exception( + self, float_frame, using_copy_on_write + ): + s = float_frame["A"] + float_frame_orig = float_frame.copy() + if using_copy_on_write: + # INFO(CoW) Series is a new object, so can be changed inplace + # without modifying original datafame + s.sort_values(inplace=True) + tm.assert_series_equal(s, float_frame_orig["A"].sort_values()) + # column in dataframe is not changed + tm.assert_frame_equal(float_frame, float_frame_orig) + else: + with pytest.raises(ValueError, match="This Series is a view"): + s.sort_values(inplace=True) + + cp = s.copy() + cp.sort_values() # it works! + + def test_sort_values_nat_values_in_int_column(self): + # GH#14922: "sorting with large float and multiple columns incorrect" + + # cause was that the int64 value NaT was considered as "na". Which is + # only correct for datetime64 columns. + + int_values = (2, int(NaT._value)) + float_values = (2.0, -1.797693e308) + + df = DataFrame( + {"int": int_values, "float": float_values}, columns=["int", "float"] + ) + + df_reversed = DataFrame( + {"int": int_values[::-1], "float": float_values[::-1]}, + columns=["int", "float"], + index=[1, 0], + ) + + # NaT is not a "na" for int64 columns, so na_position must not + # influence the result: + df_sorted = df.sort_values(["int", "float"], na_position="last") + tm.assert_frame_equal(df_sorted, df_reversed) + + df_sorted = df.sort_values(["int", "float"], na_position="first") + tm.assert_frame_equal(df_sorted, df_reversed) + + # reverse sorting order + df_sorted = df.sort_values(["int", "float"], ascending=False) + tm.assert_frame_equal(df_sorted, df) + + # and now check if NaT is still considered as "na" for datetime64 + # columns: + df = DataFrame( + {"datetime": [Timestamp("2016-01-01"), NaT], "float": float_values}, + columns=["datetime", "float"], + ) + + df_reversed = DataFrame( + {"datetime": [NaT, Timestamp("2016-01-01")], "float": float_values[::-1]}, + columns=["datetime", "float"], + index=[1, 0], + ) + + df_sorted = df.sort_values(["datetime", "float"], na_position="first") + tm.assert_frame_equal(df_sorted, df_reversed) + + df_sorted = df.sort_values(["datetime", "float"], na_position="last") + tm.assert_frame_equal(df_sorted, df) + + # Ascending should not affect the results. + df_sorted = df.sort_values(["datetime", "float"], ascending=False) + tm.assert_frame_equal(df_sorted, df) + + def test_sort_nat(self): + # GH 16836 + + d1 = [Timestamp(x) for x in ["2016-01-01", "2015-01-01", np.nan, "2016-01-01"]] + d2 = [ + Timestamp(x) + for x in ["2017-01-01", "2014-01-01", "2016-01-01", "2015-01-01"] + ] + df = DataFrame({"a": d1, "b": d2}, index=[0, 1, 2, 3]) + + d3 = [Timestamp(x) for x in ["2015-01-01", "2016-01-01", "2016-01-01", np.nan]] + d4 = [ + Timestamp(x) + for x in ["2014-01-01", "2015-01-01", "2017-01-01", "2016-01-01"] + ] + expected = DataFrame({"a": d3, "b": d4}, index=[1, 3, 0, 2]) + sorted_df = df.sort_values(by=["a", "b"]) + tm.assert_frame_equal(sorted_df, expected) + + def test_sort_values_na_position_with_categories(self): + # GH#22556 + # Positioning missing value properly when column is Categorical. + categories = ["A", "B", "C"] + category_indices = [0, 2, 4] + list_of_nans = [np.nan, np.nan] + na_indices = [1, 3] + na_position_first = "first" + na_position_last = "last" + column_name = "c" + + reversed_categories = sorted(categories, reverse=True) + reversed_category_indices = sorted(category_indices, reverse=True) + reversed_na_indices = sorted(na_indices) + + df = DataFrame( + { + column_name: Categorical( + ["A", np.nan, "B", np.nan, "C"], categories=categories, ordered=True + ) + } + ) + # sort ascending with na first + result = df.sort_values( + by=column_name, ascending=True, na_position=na_position_first + ) + expected = DataFrame( + { + column_name: Categorical( + list_of_nans + categories, categories=categories, ordered=True + ) + }, + index=na_indices + category_indices, + ) + + tm.assert_frame_equal(result, expected) + + # sort ascending with na last + result = df.sort_values( + by=column_name, ascending=True, na_position=na_position_last + ) + expected = DataFrame( + { + column_name: Categorical( + categories + list_of_nans, categories=categories, ordered=True + ) + }, + index=category_indices + na_indices, + ) + + tm.assert_frame_equal(result, expected) + + # sort descending with na first + result = df.sort_values( + by=column_name, ascending=False, na_position=na_position_first + ) + expected = DataFrame( + { + column_name: Categorical( + list_of_nans + reversed_categories, + categories=categories, + ordered=True, + ) + }, + index=reversed_na_indices + reversed_category_indices, + ) + + tm.assert_frame_equal(result, expected) + + # sort descending with na last + result = df.sort_values( + by=column_name, ascending=False, na_position=na_position_last + ) + expected = DataFrame( + { + column_name: Categorical( + reversed_categories + list_of_nans, + categories=categories, + ordered=True, + ) + }, + index=reversed_category_indices + reversed_na_indices, + ) + + tm.assert_frame_equal(result, expected) + + def test_sort_values_nat(self): + # GH#16836 + + d1 = [Timestamp(x) for x in ["2016-01-01", "2015-01-01", np.nan, "2016-01-01"]] + d2 = [ + Timestamp(x) + for x in ["2017-01-01", "2014-01-01", "2016-01-01", "2015-01-01"] + ] + df = DataFrame({"a": d1, "b": d2}, index=[0, 1, 2, 3]) + + d3 = [Timestamp(x) for x in ["2015-01-01", "2016-01-01", "2016-01-01", np.nan]] + d4 = [ + Timestamp(x) + for x in ["2014-01-01", "2015-01-01", "2017-01-01", "2016-01-01"] + ] + expected = DataFrame({"a": d3, "b": d4}, index=[1, 3, 0, 2]) + sorted_df = df.sort_values(by=["a", "b"]) + tm.assert_frame_equal(sorted_df, expected) + + def test_sort_values_na_position_with_categories_raises(self): + df = DataFrame( + { + "c": Categorical( + ["A", np.nan, "B", np.nan, "C"], + categories=["A", "B", "C"], + ordered=True, + ) + } + ) + + with pytest.raises(ValueError, match="invalid na_position: bad_position"): + df.sort_values(by="c", ascending=False, na_position="bad_position") + + @pytest.mark.parametrize("inplace", [True, False]) + @pytest.mark.parametrize( + "original_dict, sorted_dict, ignore_index, output_index", + [ + ({"A": [1, 2, 3]}, {"A": [3, 2, 1]}, True, [0, 1, 2]), + ({"A": [1, 2, 3]}, {"A": [3, 2, 1]}, False, [2, 1, 0]), + ( + {"A": [1, 2, 3], "B": [2, 3, 4]}, + {"A": [3, 2, 1], "B": [4, 3, 2]}, + True, + [0, 1, 2], + ), + ( + {"A": [1, 2, 3], "B": [2, 3, 4]}, + {"A": [3, 2, 1], "B": [4, 3, 2]}, + False, + [2, 1, 0], + ), + ], + ) + def test_sort_values_ignore_index( + self, inplace, original_dict, sorted_dict, ignore_index, output_index + ): + # GH 30114 + df = DataFrame(original_dict) + expected = DataFrame(sorted_dict, index=output_index) + kwargs = {"ignore_index": ignore_index, "inplace": inplace} + + if inplace: + result_df = df.copy() + result_df.sort_values("A", ascending=False, **kwargs) + else: + result_df = df.sort_values("A", ascending=False, **kwargs) + + tm.assert_frame_equal(result_df, expected) + tm.assert_frame_equal(df, DataFrame(original_dict)) + + def test_sort_values_nat_na_position_default(self): + # GH 13230 + expected = DataFrame( + { + "A": [1, 2, 3, 4, 4], + "date": pd.DatetimeIndex( + [ + "2010-01-01 09:00:00", + "2010-01-01 09:00:01", + "2010-01-01 09:00:02", + "2010-01-01 09:00:03", + "NaT", + ] + ), + } + ) + result = expected.sort_values(["A", "date"]) + tm.assert_frame_equal(result, expected) + + def test_sort_values_item_cache(self, using_array_manager, using_copy_on_write): + # previous behavior incorrect retained an invalid _item_cache entry + df = DataFrame( + np.random.default_rng(2).standard_normal((4, 3)), columns=["A", "B", "C"] + ) + df["D"] = df["A"] * 2 + ser = df["A"] + if not using_array_manager: + assert len(df._mgr.blocks) == 2 + + df.sort_values(by="A") + + if using_copy_on_write: + ser.iloc[0] = 99 + assert df.iloc[0, 0] == df["A"][0] + assert df.iloc[0, 0] != 99 + else: + ser.values[0] = 99 + assert df.iloc[0, 0] == df["A"][0] + assert df.iloc[0, 0] == 99 + + def test_sort_values_reshaping(self): + # GH 39426 + values = list(range(21)) + expected = DataFrame([values], columns=values) + df = expected.sort_values(expected.index[0], axis=1, ignore_index=True) + + tm.assert_frame_equal(df, expected) + + def test_sort_values_no_by_inplace(self): + # GH#50643 + df = DataFrame({"a": [1, 2, 3]}) + expected = df.copy() + result = df.sort_values(by=[], inplace=True) + tm.assert_frame_equal(df, expected) + assert result is None + + def test_sort_values_no_op_reset_index(self): + # GH#52553 + df = DataFrame({"A": [10, 20], "B": [1, 5]}, index=[2, 3]) + result = df.sort_values(by="A", ignore_index=True) + expected = DataFrame({"A": [10, 20], "B": [1, 5]}) + tm.assert_frame_equal(result, expected) + + +class TestDataFrameSortKey: # test key sorting (issue 27237) + def test_sort_values_inplace_key(self, sort_by_key): + frame = DataFrame( + np.random.default_rng(2).standard_normal((4, 4)), + index=[1, 2, 3, 4], + columns=["A", "B", "C", "D"], + ) + + sorted_df = frame.copy() + return_value = sorted_df.sort_values(by="A", inplace=True, key=sort_by_key) + assert return_value is None + expected = frame.sort_values(by="A", key=sort_by_key) + tm.assert_frame_equal(sorted_df, expected) + + sorted_df = frame.copy() + return_value = sorted_df.sort_values( + by=1, axis=1, inplace=True, key=sort_by_key + ) + assert return_value is None + expected = frame.sort_values(by=1, axis=1, key=sort_by_key) + tm.assert_frame_equal(sorted_df, expected) + + sorted_df = frame.copy() + return_value = sorted_df.sort_values( + by="A", ascending=False, inplace=True, key=sort_by_key + ) + assert return_value is None + expected = frame.sort_values(by="A", ascending=False, key=sort_by_key) + tm.assert_frame_equal(sorted_df, expected) + + sorted_df = frame.copy() + sorted_df.sort_values( + by=["A", "B"], ascending=False, inplace=True, key=sort_by_key + ) + expected = frame.sort_values(by=["A", "B"], ascending=False, key=sort_by_key) + tm.assert_frame_equal(sorted_df, expected) + + def test_sort_values_key(self): + df = DataFrame(np.array([0, 5, np.nan, 3, 2, np.nan])) + + result = df.sort_values(0) + expected = df.iloc[[0, 4, 3, 1, 2, 5]] + tm.assert_frame_equal(result, expected) + + result = df.sort_values(0, key=lambda x: x + 5) + expected = df.iloc[[0, 4, 3, 1, 2, 5]] + tm.assert_frame_equal(result, expected) + + result = df.sort_values(0, key=lambda x: -x, ascending=False) + expected = df.iloc[[0, 4, 3, 1, 2, 5]] + tm.assert_frame_equal(result, expected) + + def test_sort_values_by_key(self): + df = DataFrame( + { + "a": np.array([0, 3, np.nan, 3, 2, np.nan]), + "b": np.array([0, 2, np.nan, 5, 2, np.nan]), + } + ) + + result = df.sort_values("a", key=lambda x: -x) + expected = df.iloc[[1, 3, 4, 0, 2, 5]] + tm.assert_frame_equal(result, expected) + + result = df.sort_values(by=["a", "b"], key=lambda x: -x) + expected = df.iloc[[3, 1, 4, 0, 2, 5]] + tm.assert_frame_equal(result, expected) + + result = df.sort_values(by=["a", "b"], key=lambda x: -x, ascending=False) + expected = df.iloc[[0, 4, 1, 3, 2, 5]] + tm.assert_frame_equal(result, expected) + + def test_sort_values_by_key_by_name(self): + df = DataFrame( + { + "a": np.array([0, 3, np.nan, 3, 2, np.nan]), + "b": np.array([0, 2, np.nan, 5, 2, np.nan]), + } + ) + + def key(col): + if col.name == "a": + return -col + else: + return col + + result = df.sort_values(by="a", key=key) + expected = df.iloc[[1, 3, 4, 0, 2, 5]] + tm.assert_frame_equal(result, expected) + + result = df.sort_values(by=["a"], key=key) + expected = df.iloc[[1, 3, 4, 0, 2, 5]] + tm.assert_frame_equal(result, expected) + + result = df.sort_values(by="b", key=key) + expected = df.iloc[[0, 1, 4, 3, 2, 5]] + tm.assert_frame_equal(result, expected) + + result = df.sort_values(by=["a", "b"], key=key) + expected = df.iloc[[1, 3, 4, 0, 2, 5]] + tm.assert_frame_equal(result, expected) + + def test_sort_values_key_string(self): + df = DataFrame(np.array([["hello", "goodbye"], ["hello", "Hello"]])) + + result = df.sort_values(1) + expected = df[::-1] + tm.assert_frame_equal(result, expected) + + result = df.sort_values([0, 1], key=lambda col: col.str.lower()) + tm.assert_frame_equal(result, df) + + result = df.sort_values( + [0, 1], key=lambda col: col.str.lower(), ascending=False + ) + expected = df.sort_values(1, key=lambda col: col.str.lower(), ascending=False) + tm.assert_frame_equal(result, expected) + + def test_sort_values_key_empty(self, sort_by_key): + df = DataFrame(np.array([])) + + df.sort_values(0, key=sort_by_key) + df.sort_index(key=sort_by_key) + + def test_changes_length_raises(self): + df = DataFrame({"A": [1, 2, 3]}) + with pytest.raises(ValueError, match="change the shape"): + df.sort_values("A", key=lambda x: x[:1]) + + def test_sort_values_key_axes(self): + df = DataFrame({0: ["Hello", "goodbye"], 1: [0, 1]}) + + result = df.sort_values(0, key=lambda col: col.str.lower()) + expected = df[::-1] + tm.assert_frame_equal(result, expected) + + result = df.sort_values(1, key=lambda col: -col) + expected = df[::-1] + tm.assert_frame_equal(result, expected) + + def test_sort_values_key_dict_axis(self): + df = DataFrame({0: ["Hello", 0], 1: ["goodbye", 1]}) + + result = df.sort_values(0, key=lambda col: col.str.lower(), axis=1) + expected = df.loc[:, ::-1] + tm.assert_frame_equal(result, expected) + + result = df.sort_values(1, key=lambda col: -col, axis=1) + expected = df.loc[:, ::-1] + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("ordered", [True, False]) + def test_sort_values_key_casts_to_categorical(self, ordered): + # https://github.com/pandas-dev/pandas/issues/36383 + categories = ["c", "b", "a"] + df = DataFrame({"x": [1, 1, 1], "y": ["a", "b", "c"]}) + + def sorter(key): + if key.name == "y": + return pd.Series( + Categorical(key, categories=categories, ordered=ordered) + ) + return key + + result = df.sort_values(by=["x", "y"], key=sorter) + expected = DataFrame( + {"x": [1, 1, 1], "y": ["c", "b", "a"]}, index=pd.Index([2, 1, 0]) + ) + + tm.assert_frame_equal(result, expected) + + +@pytest.fixture +def df_none(): + return DataFrame( + { + "outer": ["a", "a", "a", "b", "b", "b"], + "inner": [1, 2, 2, 2, 1, 1], + "A": np.arange(6, 0, -1), + ("B", 5): ["one", "one", "two", "two", "one", "one"], + } + ) + + +@pytest.fixture(params=[["outer"], ["outer", "inner"]]) +def df_idx(request, df_none): + levels = request.param + return df_none.set_index(levels) + + +@pytest.fixture( + params=[ + "inner", # index level + ["outer"], # list of index level + "A", # column + [("B", 5)], # list of column + ["inner", "outer"], # two index levels + [("B", 5), "outer"], # index level and column + ["A", ("B", 5)], # Two columns + ["inner", "outer"], # two index levels and column + ] +) +def sort_names(request): + return request.param + + +@pytest.fixture(params=[True, False]) +def ascending(request): + return request.param + + +class TestSortValuesLevelAsStr: + def test_sort_index_level_and_column_label( + self, df_none, df_idx, sort_names, ascending, request + ): + # GH#14353 + if ( + Version(np.__version__) >= Version("1.25") + and request.node.callspec.id == "df_idx0-inner-True" + ): + request.applymarker( + pytest.mark.xfail( + reason=( + "pandas default unstable sorting of duplicates" + "issue with numpy>=1.25 with AVX instructions" + ), + strict=False, + ) + ) + + # Get index levels from df_idx + levels = df_idx.index.names + + # Compute expected by sorting on columns and the setting index + expected = df_none.sort_values( + by=sort_names, ascending=ascending, axis=0 + ).set_index(levels) + + # Compute result sorting on mix on columns and index levels + result = df_idx.sort_values(by=sort_names, ascending=ascending, axis=0) + + tm.assert_frame_equal(result, expected) + + def test_sort_column_level_and_index_label( + self, df_none, df_idx, sort_names, ascending, request + ): + # GH#14353 + + # Get levels from df_idx + levels = df_idx.index.names + + # Compute expected by sorting on axis=0, setting index levels, and then + # transposing. For some cases this will result in a frame with + # multiple column levels + expected = ( + df_none.sort_values(by=sort_names, ascending=ascending, axis=0) + .set_index(levels) + .T + ) + + # Compute result by transposing and sorting on axis=1. + result = df_idx.T.sort_values(by=sort_names, ascending=ascending, axis=1) + + if Version(np.__version__) >= Version("1.25"): + request.applymarker( + pytest.mark.xfail( + reason=( + "pandas default unstable sorting of duplicates" + "issue with numpy>=1.25 with AVX instructions" + ), + strict=False, + ) + ) + + tm.assert_frame_equal(result, expected) + + def test_sort_values_validate_ascending_for_value_error(self): + # GH41634 + df = DataFrame({"D": [23, 7, 21]}) + + msg = 'For argument "ascending" expected type bool, received type str.' + with pytest.raises(ValueError, match=msg): + df.sort_values(by="D", ascending="False") + + @pytest.mark.parametrize("ascending", [False, 0, 1, True]) + def test_sort_values_validate_ascending_functional(self, ascending): + df = DataFrame({"D": [23, 7, 21]}) + indexer = df["D"].argsort().values + + if not ascending: + indexer = indexer[::-1] + + expected = df.loc[df.index[indexer]] + result = df.sort_values(by="D", ascending=ascending) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_swapaxes.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_swapaxes.py new file mode 100644 index 0000000000000000000000000000000000000000..53a4691d48b1c7027e6e05c2050f4aa0eca4b3b4 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_swapaxes.py @@ -0,0 +1,37 @@ +import numpy as np +import pytest + +from pandas import DataFrame +import pandas._testing as tm + + +class TestSwapAxes: + def test_swapaxes(self): + df = DataFrame(np.random.default_rng(2).standard_normal((10, 5))) + msg = "'DataFrame.swapaxes' is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + tm.assert_frame_equal(df.T, df.swapaxes(0, 1)) + tm.assert_frame_equal(df.T, df.swapaxes(1, 0)) + + def test_swapaxes_noop(self): + df = DataFrame(np.random.default_rng(2).standard_normal((10, 5))) + msg = "'DataFrame.swapaxes' is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + tm.assert_frame_equal(df, df.swapaxes(0, 0)) + + def test_swapaxes_invalid_axis(self): + df = DataFrame(np.random.default_rng(2).standard_normal((10, 5))) + msg = "'DataFrame.swapaxes' is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + msg = "No axis named 2 for object type DataFrame" + with pytest.raises(ValueError, match=msg): + df.swapaxes(2, 5) + + def test_round_empty_not_input(self): + # GH#51032 + df = DataFrame({"a": [1, 2]}) + msg = "'DataFrame.swapaxes' is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.swapaxes("index", "index") + tm.assert_frame_equal(df, result) + assert df is not result diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_swaplevel.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_swaplevel.py new file mode 100644 index 0000000000000000000000000000000000000000..5511ac7d6b1b209ba00a7414671aa7e61d403898 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_swaplevel.py @@ -0,0 +1,36 @@ +import pytest + +from pandas import DataFrame +import pandas._testing as tm + + +class TestSwaplevel: + def test_swaplevel(self, multiindex_dataframe_random_data): + frame = multiindex_dataframe_random_data + + swapped = frame["A"].swaplevel() + swapped2 = frame["A"].swaplevel(0) + swapped3 = frame["A"].swaplevel(0, 1) + swapped4 = frame["A"].swaplevel("first", "second") + assert not swapped.index.equals(frame.index) + tm.assert_series_equal(swapped, swapped2) + tm.assert_series_equal(swapped, swapped3) + tm.assert_series_equal(swapped, swapped4) + + back = swapped.swaplevel() + back2 = swapped.swaplevel(0) + back3 = swapped.swaplevel(0, 1) + back4 = swapped.swaplevel("second", "first") + assert back.index.equals(frame.index) + tm.assert_series_equal(back, back2) + tm.assert_series_equal(back, back3) + tm.assert_series_equal(back, back4) + + ft = frame.T + swapped = ft.swaplevel("first", "second", axis=1) + exp = frame.swaplevel("first", "second").T + tm.assert_frame_equal(swapped, exp) + + msg = "Can only swap levels on a hierarchical axis." + with pytest.raises(TypeError, match=msg): + DataFrame(range(3)).swaplevel() diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_to_csv.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_to_csv.py new file mode 100644 index 0000000000000000000000000000000000000000..3b6a54698b5b6ee6de55193eeacb974312362125 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_to_csv.py @@ -0,0 +1,1403 @@ +import csv +from io import StringIO +import os + +import numpy as np +import pytest + +from pandas.errors import ParserError + +import pandas as pd +from pandas import ( + DataFrame, + Index, + MultiIndex, + NaT, + Series, + Timestamp, + date_range, + period_range, + read_csv, + to_datetime, +) +import pandas._testing as tm +import pandas.core.common as com + +from pandas.io.common import get_handle + + +class TestDataFrameToCSV: + def read_csv(self, path, **kwargs): + params = {"index_col": 0} + params.update(**kwargs) + + return read_csv(path, **params) + + def test_to_csv_from_csv1(self, float_frame, datetime_frame): + with tm.ensure_clean("__tmp_to_csv_from_csv1__") as path: + float_frame.iloc[:5, float_frame.columns.get_loc("A")] = np.nan + + float_frame.to_csv(path) + float_frame.to_csv(path, columns=["A", "B"]) + float_frame.to_csv(path, header=False) + float_frame.to_csv(path, index=False) + + # test roundtrip + # freq does not roundtrip + datetime_frame.index = datetime_frame.index._with_freq(None) + datetime_frame.to_csv(path) + recons = self.read_csv(path, parse_dates=True) + tm.assert_frame_equal(datetime_frame, recons) + + datetime_frame.to_csv(path, index_label="index") + recons = self.read_csv(path, index_col=None, parse_dates=True) + + assert len(recons.columns) == len(datetime_frame.columns) + 1 + + # no index + datetime_frame.to_csv(path, index=False) + recons = self.read_csv(path, index_col=None, parse_dates=True) + tm.assert_almost_equal(datetime_frame.values, recons.values) + + # corner case + dm = DataFrame( + { + "s1": Series(range(3), index=np.arange(3, dtype=np.int64)), + "s2": Series(range(2), index=np.arange(2, dtype=np.int64)), + } + ) + dm.to_csv(path) + + recons = self.read_csv(path) + tm.assert_frame_equal(dm, recons) + + def test_to_csv_from_csv2(self, float_frame): + with tm.ensure_clean("__tmp_to_csv_from_csv2__") as path: + # duplicate index + df = DataFrame( + np.random.default_rng(2).standard_normal((3, 3)), + index=["a", "a", "b"], + columns=["x", "y", "z"], + ) + df.to_csv(path) + result = self.read_csv(path) + tm.assert_frame_equal(result, df) + + midx = MultiIndex.from_tuples([("A", 1, 2), ("A", 1, 2), ("B", 1, 2)]) + df = DataFrame( + np.random.default_rng(2).standard_normal((3, 3)), + index=midx, + columns=["x", "y", "z"], + ) + + df.to_csv(path) + result = self.read_csv(path, index_col=[0, 1, 2], parse_dates=False) + tm.assert_frame_equal(result, df, check_names=False) + + # column aliases + col_aliases = Index(["AA", "X", "Y", "Z"]) + float_frame.to_csv(path, header=col_aliases) + + rs = self.read_csv(path) + xp = float_frame.copy() + xp.columns = col_aliases + tm.assert_frame_equal(xp, rs) + + msg = "Writing 4 cols but got 2 aliases" + with pytest.raises(ValueError, match=msg): + float_frame.to_csv(path, header=["AA", "X"]) + + def test_to_csv_from_csv3(self): + with tm.ensure_clean("__tmp_to_csv_from_csv3__") as path: + df1 = DataFrame(np.random.default_rng(2).standard_normal((3, 1))) + df2 = DataFrame(np.random.default_rng(2).standard_normal((3, 1))) + + df1.to_csv(path) + df2.to_csv(path, mode="a", header=False) + xp = pd.concat([df1, df2]) + rs = read_csv(path, index_col=0) + rs.columns = [int(label) for label in rs.columns] + xp.columns = [int(label) for label in xp.columns] + tm.assert_frame_equal(xp, rs) + + def test_to_csv_from_csv4(self): + with tm.ensure_clean("__tmp_to_csv_from_csv4__") as path: + # GH 10833 (TimedeltaIndex formatting) + dt = pd.Timedelta(seconds=1) + df = DataFrame( + {"dt_data": [i * dt for i in range(3)]}, + index=Index([i * dt for i in range(3)], name="dt_index"), + ) + df.to_csv(path) + + result = read_csv(path, index_col="dt_index") + result.index = pd.to_timedelta(result.index) + result["dt_data"] = pd.to_timedelta(result["dt_data"]) + + tm.assert_frame_equal(df, result, check_index_type=True) + + def test_to_csv_from_csv5(self, timezone_frame): + # tz, 8260 + with tm.ensure_clean("__tmp_to_csv_from_csv5__") as path: + timezone_frame.to_csv(path) + result = read_csv(path, index_col=0, parse_dates=["A"]) + + converter = ( + lambda c: to_datetime(result[c]) + .dt.tz_convert("UTC") + .dt.tz_convert(timezone_frame[c].dt.tz) + ) + result["B"] = converter("B") + result["C"] = converter("C") + tm.assert_frame_equal(result, timezone_frame) + + def test_to_csv_cols_reordering(self): + # GH3454 + chunksize = 5 + N = int(chunksize * 2.5) + + df = DataFrame( + np.ones((N, 3)), + index=Index([f"i-{i}" for i in range(N)], name="a"), + columns=Index([f"i-{i}" for i in range(3)], name="a"), + ) + cs = df.columns + cols = [cs[2], cs[0]] + + with tm.ensure_clean() as path: + df.to_csv(path, columns=cols, chunksize=chunksize) + rs_c = read_csv(path, index_col=0) + + tm.assert_frame_equal(df[cols], rs_c, check_names=False) + + @pytest.mark.parametrize("cols", [None, ["b", "a"]]) + def test_to_csv_new_dupe_cols(self, cols): + chunksize = 5 + N = int(chunksize * 2.5) + + # dupe cols + df = DataFrame( + np.ones((N, 3)), + index=Index([f"i-{i}" for i in range(N)], name="a"), + columns=["a", "a", "b"], + ) + with tm.ensure_clean() as path: + df.to_csv(path, columns=cols, chunksize=chunksize) + rs_c = read_csv(path, index_col=0) + + # we wrote them in a different order + # so compare them in that order + if cols is not None: + if df.columns.is_unique: + rs_c.columns = cols + else: + indexer, missing = df.columns.get_indexer_non_unique(cols) + rs_c.columns = df.columns.take(indexer) + + for c in cols: + obj_df = df[c] + obj_rs = rs_c[c] + if isinstance(obj_df, Series): + tm.assert_series_equal(obj_df, obj_rs) + else: + tm.assert_frame_equal(obj_df, obj_rs, check_names=False) + + # wrote in the same order + else: + rs_c.columns = df.columns + tm.assert_frame_equal(df, rs_c, check_names=False) + + @pytest.mark.slow + def test_to_csv_dtnat(self): + # GH3437 + def make_dtnat_arr(n, nnat=None): + if nnat is None: + nnat = int(n * 0.1) # 10% + s = list(date_range("2000", freq="5min", periods=n)) + if nnat: + for i in np.random.default_rng(2).integers(0, len(s), nnat): + s[i] = NaT + i = np.random.default_rng(2).integers(100) + s[-i] = NaT + s[i] = NaT + return s + + chunksize = 1000 + s1 = make_dtnat_arr(chunksize + 5) + s2 = make_dtnat_arr(chunksize + 5, 0) + + with tm.ensure_clean("1.csv") as pth: + df = DataFrame({"a": s1, "b": s2}) + df.to_csv(pth, chunksize=chunksize) + + recons = self.read_csv(pth).apply(to_datetime) + tm.assert_frame_equal(df, recons, check_names=False) + + def _return_result_expected( + self, + df, + chunksize, + r_dtype=None, + c_dtype=None, + rnlvl=None, + cnlvl=None, + dupe_col=False, + ): + kwargs = {"parse_dates": False} + if cnlvl: + if rnlvl is not None: + kwargs["index_col"] = list(range(rnlvl)) + kwargs["header"] = list(range(cnlvl)) + + with tm.ensure_clean("__tmp_to_csv_moar__") as path: + df.to_csv(path, encoding="utf8", chunksize=chunksize) + recons = self.read_csv(path, **kwargs) + else: + kwargs["header"] = 0 + + with tm.ensure_clean("__tmp_to_csv_moar__") as path: + df.to_csv(path, encoding="utf8", chunksize=chunksize) + recons = self.read_csv(path, **kwargs) + + def _to_uni(x): + if not isinstance(x, str): + return x.decode("utf8") + return x + + if dupe_col: + # read_Csv disambiguates the columns by + # labeling them dupe.1,dupe.2, etc'. monkey patch columns + recons.columns = df.columns + if rnlvl and not cnlvl: + delta_lvl = [recons.iloc[:, i].values for i in range(rnlvl - 1)] + ix = MultiIndex.from_arrays([list(recons.index)] + delta_lvl) + recons.index = ix + recons = recons.iloc[:, rnlvl - 1 :] + + type_map = {"i": "i", "f": "f", "s": "O", "u": "O", "dt": "O", "p": "O"} + if r_dtype: + if r_dtype == "u": # unicode + r_dtype = "O" + recons.index = np.array( + [_to_uni(label) for label in recons.index], dtype=r_dtype + ) + df.index = np.array( + [_to_uni(label) for label in df.index], dtype=r_dtype + ) + elif r_dtype == "dt": # unicode + r_dtype = "O" + recons.index = np.array( + [Timestamp(label) for label in recons.index], dtype=r_dtype + ) + df.index = np.array( + [Timestamp(label) for label in df.index], dtype=r_dtype + ) + elif r_dtype == "p": + r_dtype = "O" + idx_list = to_datetime(recons.index) + recons.index = np.array( + [Timestamp(label) for label in idx_list], dtype=r_dtype + ) + df.index = np.array( + list(map(Timestamp, df.index.to_timestamp())), dtype=r_dtype + ) + else: + r_dtype = type_map.get(r_dtype) + recons.index = np.array(recons.index, dtype=r_dtype) + df.index = np.array(df.index, dtype=r_dtype) + if c_dtype: + if c_dtype == "u": + c_dtype = "O" + recons.columns = np.array( + [_to_uni(label) for label in recons.columns], dtype=c_dtype + ) + df.columns = np.array( + [_to_uni(label) for label in df.columns], dtype=c_dtype + ) + elif c_dtype == "dt": + c_dtype = "O" + recons.columns = np.array( + [Timestamp(label) for label in recons.columns], dtype=c_dtype + ) + df.columns = np.array( + [Timestamp(label) for label in df.columns], dtype=c_dtype + ) + elif c_dtype == "p": + c_dtype = "O" + col_list = to_datetime(recons.columns) + recons.columns = np.array( + [Timestamp(label) for label in col_list], dtype=c_dtype + ) + col_list = df.columns.to_timestamp() + df.columns = np.array( + [Timestamp(label) for label in col_list], dtype=c_dtype + ) + else: + c_dtype = type_map.get(c_dtype) + recons.columns = np.array(recons.columns, dtype=c_dtype) + df.columns = np.array(df.columns, dtype=c_dtype) + return df, recons + + @pytest.mark.slow + @pytest.mark.parametrize( + "nrows", [2, 10, 99, 100, 101, 102, 198, 199, 200, 201, 202, 249, 250, 251] + ) + def test_to_csv_nrows(self, nrows): + df = DataFrame( + np.ones((nrows, 4)), + index=date_range("2020-01-01", periods=nrows), + columns=Index(list("abcd"), dtype=object), + ) + result, expected = self._return_result_expected(df, 1000, "dt", "s") + tm.assert_frame_equal(result, expected, check_names=False) + + @pytest.mark.slow + @pytest.mark.parametrize( + "nrows", [2, 10, 99, 100, 101, 102, 198, 199, 200, 201, 202, 249, 250, 251] + ) + @pytest.mark.parametrize( + "r_idx_type, c_idx_type", [("i", "i"), ("s", "s"), ("s", "dt"), ("p", "p")] + ) + @pytest.mark.parametrize("ncols", [1, 2, 3, 4]) + @pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") + def test_to_csv_idx_types(self, nrows, r_idx_type, c_idx_type, ncols): + axes = { + "i": lambda n: Index(np.arange(n), dtype=np.int64), + "s": lambda n: Index([f"{i}_{chr(i)}" for i in range(97, 97 + n)]), + "dt": lambda n: date_range("2020-01-01", periods=n), + "p": lambda n: period_range("2020-01-01", periods=n, freq="D"), + } + df = DataFrame( + np.ones((nrows, ncols)), + index=axes[r_idx_type](nrows), + columns=axes[c_idx_type](ncols), + ) + result, expected = self._return_result_expected( + df, + 1000, + r_idx_type, + c_idx_type, + ) + tm.assert_frame_equal(result, expected, check_names=False) + + @pytest.mark.slow + @pytest.mark.parametrize( + "nrows", [10, 98, 99, 100, 101, 102, 198, 199, 200, 201, 202, 249, 250, 251] + ) + @pytest.mark.parametrize("ncols", [1, 2, 3, 4]) + def test_to_csv_idx_ncols(self, nrows, ncols): + df = DataFrame( + np.ones((nrows, ncols)), + index=Index([f"i-{i}" for i in range(nrows)], name="a"), + columns=Index([f"i-{i}" for i in range(ncols)], name="a"), + ) + result, expected = self._return_result_expected(df, 1000) + tm.assert_frame_equal(result, expected, check_names=False) + + @pytest.mark.slow + @pytest.mark.parametrize("nrows", [10, 98, 99, 100, 101, 102]) + def test_to_csv_dup_cols(self, nrows): + df = DataFrame( + np.ones((nrows, 3)), + index=Index([f"i-{i}" for i in range(nrows)], name="a"), + columns=Index([f"i-{i}" for i in range(3)], name="a"), + ) + + cols = list(df.columns) + cols[:2] = ["dupe", "dupe"] + cols[-2:] = ["dupe", "dupe"] + ix = list(df.index) + ix[:2] = ["rdupe", "rdupe"] + ix[-2:] = ["rdupe", "rdupe"] + df.index = ix + df.columns = cols + result, expected = self._return_result_expected(df, 1000, dupe_col=True) + tm.assert_frame_equal(result, expected, check_names=False) + + @pytest.mark.slow + def test_to_csv_empty(self): + df = DataFrame(index=np.arange(10, dtype=np.int64)) + result, expected = self._return_result_expected(df, 1000) + tm.assert_frame_equal(result, expected, check_column_type=False) + + @pytest.mark.slow + def test_to_csv_chunksize(self): + chunksize = 1000 + rows = chunksize // 2 + 1 + df = DataFrame( + np.ones((rows, 2)), + columns=Index(list("ab")), + index=MultiIndex.from_arrays([range(rows) for _ in range(2)]), + ) + result, expected = self._return_result_expected(df, chunksize, rnlvl=2) + tm.assert_frame_equal(result, expected, check_names=False) + + @pytest.mark.slow + @pytest.mark.parametrize( + "nrows", [2, 10, 99, 100, 101, 102, 198, 199, 200, 201, 202, 249, 250, 251] + ) + @pytest.mark.parametrize("ncols", [2, 3, 4]) + @pytest.mark.parametrize( + "df_params, func_params", + [ + [{"r_idx_nlevels": 2}, {"rnlvl": 2}], + [{"c_idx_nlevels": 2}, {"cnlvl": 2}], + [{"r_idx_nlevels": 2, "c_idx_nlevels": 2}, {"rnlvl": 2, "cnlvl": 2}], + ], + ) + def test_to_csv_params(self, nrows, df_params, func_params, ncols): + if df_params.get("r_idx_nlevels"): + index = MultiIndex.from_arrays( + [f"i-{i}" for i in range(nrows)] + for _ in range(df_params["r_idx_nlevels"]) + ) + else: + index = None + + if df_params.get("c_idx_nlevels"): + columns = MultiIndex.from_arrays( + [f"i-{i}" for i in range(ncols)] + for _ in range(df_params["c_idx_nlevels"]) + ) + else: + columns = Index([f"i-{i}" for i in range(ncols)]) + df = DataFrame(np.ones((nrows, ncols)), index=index, columns=columns) + result, expected = self._return_result_expected(df, 1000, **func_params) + tm.assert_frame_equal(result, expected, check_names=False) + + def test_to_csv_from_csv_w_some_infs(self, float_frame): + # test roundtrip with inf, -inf, nan, as full columns and mix + float_frame["G"] = np.nan + f = lambda x: [np.inf, np.nan][np.random.default_rng(2).random() < 0.5] + float_frame["h"] = float_frame.index.map(f) + + with tm.ensure_clean() as path: + float_frame.to_csv(path) + recons = self.read_csv(path) + + tm.assert_frame_equal(float_frame, recons) + tm.assert_frame_equal(np.isinf(float_frame), np.isinf(recons)) + + def test_to_csv_from_csv_w_all_infs(self, float_frame): + # test roundtrip with inf, -inf, nan, as full columns and mix + float_frame["E"] = np.inf + float_frame["F"] = -np.inf + + with tm.ensure_clean() as path: + float_frame.to_csv(path) + recons = self.read_csv(path) + + tm.assert_frame_equal(float_frame, recons) + tm.assert_frame_equal(np.isinf(float_frame), np.isinf(recons)) + + def test_to_csv_no_index(self): + # GH 3624, after appending columns, to_csv fails + with tm.ensure_clean("__tmp_to_csv_no_index__") as path: + df = DataFrame({"c1": [1, 2, 3], "c2": [4, 5, 6]}) + df.to_csv(path, index=False) + result = read_csv(path) + tm.assert_frame_equal(df, result) + df["c3"] = Series([7, 8, 9], dtype="int64") + df.to_csv(path, index=False) + result = read_csv(path) + tm.assert_frame_equal(df, result) + + def test_to_csv_with_mix_columns(self): + # gh-11637: incorrect output when a mix of integer and string column + # names passed as columns parameter in to_csv + + df = DataFrame({0: ["a", "b", "c"], 1: ["aa", "bb", "cc"]}) + df["test"] = "txt" + assert df.to_csv() == df.to_csv(columns=[0, 1, "test"]) + + def test_to_csv_headers(self): + # GH6186, the presence or absence of `index` incorrectly + # causes to_csv to have different header semantics. + from_df = DataFrame([[1, 2], [3, 4]], columns=["A", "B"]) + to_df = DataFrame([[1, 2], [3, 4]], columns=["X", "Y"]) + with tm.ensure_clean("__tmp_to_csv_headers__") as path: + from_df.to_csv(path, header=["X", "Y"]) + recons = self.read_csv(path) + + tm.assert_frame_equal(to_df, recons) + + from_df.to_csv(path, index=False, header=["X", "Y"]) + recons = self.read_csv(path) + + return_value = recons.reset_index(inplace=True) + assert return_value is None + tm.assert_frame_equal(to_df, recons) + + def test_to_csv_multiindex(self, float_frame, datetime_frame): + frame = float_frame + old_index = frame.index + arrays = np.arange(len(old_index) * 2, dtype=np.int64).reshape(2, -1) + new_index = MultiIndex.from_arrays(arrays, names=["first", "second"]) + frame.index = new_index + + with tm.ensure_clean("__tmp_to_csv_multiindex__") as path: + frame.to_csv(path, header=False) + frame.to_csv(path, columns=["A", "B"]) + + # round trip + frame.to_csv(path) + + df = self.read_csv(path, index_col=[0, 1], parse_dates=False) + + # TODO to_csv drops column name + tm.assert_frame_equal(frame, df, check_names=False) + assert frame.index.names == df.index.names + + # needed if setUp becomes a class method + float_frame.index = old_index + + # try multiindex with dates + tsframe = datetime_frame + old_index = tsframe.index + new_index = [old_index, np.arange(len(old_index), dtype=np.int64)] + tsframe.index = MultiIndex.from_arrays(new_index) + + tsframe.to_csv(path, index_label=["time", "foo"]) + with tm.assert_produces_warning( + UserWarning, match="Could not infer format" + ): + recons = self.read_csv(path, index_col=[0, 1], parse_dates=True) + + # TODO to_csv drops column name + tm.assert_frame_equal(tsframe, recons, check_names=False) + + # do not load index + tsframe.to_csv(path) + recons = self.read_csv(path, index_col=None) + assert len(recons.columns) == len(tsframe.columns) + 2 + + # no index + tsframe.to_csv(path, index=False) + recons = self.read_csv(path, index_col=None) + tm.assert_almost_equal(recons.values, datetime_frame.values) + + # needed if setUp becomes class method + datetime_frame.index = old_index + + with tm.ensure_clean("__tmp_to_csv_multiindex__") as path: + # GH3571, GH1651, GH3141 + + def _make_frame(names=None): + if names is True: + names = ["first", "second"] + return DataFrame( + np.random.default_rng(2).integers(0, 10, size=(3, 3)), + columns=MultiIndex.from_tuples( + [("bah", "foo"), ("bah", "bar"), ("ban", "baz")], names=names + ), + dtype="int64", + ) + + # column & index are multi-index + df = DataFrame( + np.ones((5, 3)), + columns=MultiIndex.from_arrays( + [[f"i-{i}" for i in range(3)] for _ in range(4)], names=list("abcd") + ), + index=MultiIndex.from_arrays( + [[f"i-{i}" for i in range(5)] for _ in range(2)], names=list("ab") + ), + ) + df.to_csv(path) + result = read_csv(path, header=[0, 1, 2, 3], index_col=[0, 1]) + tm.assert_frame_equal(df, result) + + # column is mi + df = DataFrame( + np.ones((5, 3)), + columns=MultiIndex.from_arrays( + [[f"i-{i}" for i in range(3)] for _ in range(4)], names=list("abcd") + ), + ) + df.to_csv(path) + result = read_csv(path, header=[0, 1, 2, 3], index_col=0) + tm.assert_frame_equal(df, result) + + # dup column names? + df = DataFrame( + np.ones((5, 3)), + columns=MultiIndex.from_arrays( + [[f"i-{i}" for i in range(3)] for _ in range(4)], names=list("abcd") + ), + index=MultiIndex.from_arrays( + [[f"i-{i}" for i in range(5)] for _ in range(3)], names=list("abc") + ), + ) + df.to_csv(path) + result = read_csv(path, header=[0, 1, 2, 3], index_col=[0, 1, 2]) + tm.assert_frame_equal(df, result) + + # writing with no index + df = _make_frame() + df.to_csv(path, index=False) + result = read_csv(path, header=[0, 1]) + tm.assert_frame_equal(df, result) + + # we lose the names here + df = _make_frame(True) + df.to_csv(path, index=False) + result = read_csv(path, header=[0, 1]) + assert com.all_none(*result.columns.names) + result.columns.names = df.columns.names + tm.assert_frame_equal(df, result) + + # whatsnew example + df = _make_frame() + df.to_csv(path) + result = read_csv(path, header=[0, 1], index_col=[0]) + tm.assert_frame_equal(df, result) + + df = _make_frame(True) + df.to_csv(path) + result = read_csv(path, header=[0, 1], index_col=[0]) + tm.assert_frame_equal(df, result) + + # invalid options + df = _make_frame(True) + df.to_csv(path) + + for i in [6, 7]: + msg = f"len of {i}, but only 5 lines in file" + with pytest.raises(ParserError, match=msg): + read_csv(path, header=list(range(i)), index_col=0) + + # write with cols + msg = "cannot specify cols with a MultiIndex" + with pytest.raises(TypeError, match=msg): + df.to_csv(path, columns=["foo", "bar"]) + + with tm.ensure_clean("__tmp_to_csv_multiindex__") as path: + # empty + tsframe[:0].to_csv(path) + recons = self.read_csv(path) + + exp = tsframe[:0] + exp.index = [] + + tm.assert_index_equal(recons.columns, exp.columns) + assert len(recons) == 0 + + def test_to_csv_interval_index(self, using_infer_string): + # GH 28210 + df = DataFrame({"A": list("abc"), "B": range(3)}, index=pd.interval_range(0, 3)) + + with tm.ensure_clean("__tmp_to_csv_interval_index__.csv") as path: + df.to_csv(path) + result = self.read_csv(path, index_col=0) + + # can't roundtrip intervalindex via read_csv so check string repr (GH 23595) + expected = df.copy() + expected.index = expected.index.astype("str") + + tm.assert_frame_equal(result, expected) + + def test_to_csv_float32_nanrep(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((1, 4)).astype(np.float32) + ) + df[1] = np.nan + + with tm.ensure_clean("__tmp_to_csv_float32_nanrep__.csv") as path: + df.to_csv(path, na_rep=999) + + with open(path, encoding="utf-8") as f: + lines = f.readlines() + assert lines[1].split(",")[2] == "999" + + def test_to_csv_withcommas(self): + # Commas inside fields should be correctly escaped when saving as CSV. + df = DataFrame({"A": [1, 2, 3], "B": ["5,6", "7,8", "9,0"]}) + + with tm.ensure_clean("__tmp_to_csv_withcommas__.csv") as path: + df.to_csv(path) + df2 = self.read_csv(path) + tm.assert_frame_equal(df2, df) + + def test_to_csv_mixed(self): + def create_cols(name): + return [f"{name}{i:03d}" for i in range(5)] + + df_float = DataFrame( + np.random.default_rng(2).standard_normal((100, 5)), + dtype="float64", + columns=create_cols("float"), + ) + df_int = DataFrame( + np.random.default_rng(2).standard_normal((100, 5)).astype("int64"), + dtype="int64", + columns=create_cols("int"), + ) + df_bool = DataFrame(True, index=df_float.index, columns=create_cols("bool")) + df_object = DataFrame( + "foo", index=df_float.index, columns=create_cols("object"), dtype="object" + ) + df_dt = DataFrame( + Timestamp("20010101").as_unit("ns"), + index=df_float.index, + columns=create_cols("date"), + ) + + # add in some nans + df_float.iloc[30:50, 1:3] = np.nan + df_dt.iloc[30:50, 1:3] = np.nan + + df = pd.concat([df_float, df_int, df_bool, df_object, df_dt], axis=1) + + # dtype + dtypes = {} + for n, dtype in [ + ("float", np.float64), + ("int", np.int64), + ("bool", np.bool_), + ("object", object), + ]: + for c in create_cols(n): + dtypes[c] = dtype + + with tm.ensure_clean() as filename: + df.to_csv(filename) + rs = read_csv( + filename, index_col=0, dtype=dtypes, parse_dates=create_cols("date") + ) + tm.assert_frame_equal(rs, df) + + def test_to_csv_dups_cols(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((1000, 30)), + columns=list(range(15)) + list(range(15)), + dtype="float64", + ) + + with tm.ensure_clean() as filename: + df.to_csv(filename) # single dtype, fine + result = read_csv(filename, index_col=0) + result.columns = df.columns + tm.assert_frame_equal(result, df) + + df_float = DataFrame( + np.random.default_rng(2).standard_normal((1000, 3)), dtype="float64" + ) + df_int = DataFrame(np.random.default_rng(2).standard_normal((1000, 3))).astype( + "int64" + ) + df_bool = DataFrame(True, index=df_float.index, columns=range(3)) + df_object = DataFrame("foo", index=df_float.index, columns=range(3)) + df_dt = DataFrame( + Timestamp("20010101").as_unit("ns"), index=df_float.index, columns=range(3) + ) + df = pd.concat( + [df_float, df_int, df_bool, df_object, df_dt], axis=1, ignore_index=True + ) + + df.columns = [0, 1, 2] * 5 + + with tm.ensure_clean() as filename: + df.to_csv(filename) + result = read_csv(filename, index_col=0) + + # date cols + for i in ["0.4", "1.4", "2.4"]: + result[i] = to_datetime(result[i]) + + result.columns = df.columns + tm.assert_frame_equal(result, df) + + def test_to_csv_dups_cols2(self): + # GH3457 + df = DataFrame( + np.ones((5, 3)), + index=Index([f"i-{i}" for i in range(5)], name="foo"), + columns=Index(["a", "a", "b"]), + ) + + with tm.ensure_clean() as filename: + df.to_csv(filename) + + # read_csv will rename the dups columns + result = read_csv(filename, index_col=0) + result = result.rename(columns={"a.1": "a"}) + tm.assert_frame_equal(result, df) + + @pytest.mark.parametrize("chunksize", [10000, 50000, 100000]) + def test_to_csv_chunking(self, chunksize): + aa = DataFrame({"A": range(100000)}) + aa["B"] = aa.A + 1.0 + aa["C"] = aa.A + 2.0 + aa["D"] = aa.A + 3.0 + + with tm.ensure_clean() as filename: + aa.to_csv(filename, chunksize=chunksize) + rs = read_csv(filename, index_col=0) + tm.assert_frame_equal(rs, aa) + + @pytest.mark.slow + def test_to_csv_wide_frame_formatting(self, monkeypatch): + # Issue #8621 + chunksize = 100 + df = DataFrame( + np.random.default_rng(2).standard_normal((1, chunksize + 10)), + columns=None, + index=None, + ) + with tm.ensure_clean() as filename: + with monkeypatch.context() as m: + m.setattr("pandas.io.formats.csvs._DEFAULT_CHUNKSIZE_CELLS", chunksize) + df.to_csv(filename, header=False, index=False) + rs = read_csv(filename, header=None) + tm.assert_frame_equal(rs, df) + + def test_to_csv_bug(self): + f1 = StringIO("a,1.0\nb,2.0") + df = self.read_csv(f1, header=None) + newdf = DataFrame({"t": df[df.columns[0]]}) + + with tm.ensure_clean() as path: + newdf.to_csv(path) + + recons = read_csv(path, index_col=0) + # don't check_names as t != 1 + tm.assert_frame_equal(recons, newdf, check_names=False) + + def test_to_csv_unicode(self): + df = DataFrame({"c/\u03c3": [1, 2, 3]}) + with tm.ensure_clean() as path: + df.to_csv(path, encoding="UTF-8") + df2 = read_csv(path, index_col=0, encoding="UTF-8") + tm.assert_frame_equal(df, df2) + + df.to_csv(path, encoding="UTF-8", index=False) + df2 = read_csv(path, index_col=None, encoding="UTF-8") + tm.assert_frame_equal(df, df2) + + def test_to_csv_unicode_index_col(self): + buf = StringIO("") + df = DataFrame( + [["\u05d0", "d2", "d3", "d4"], ["a1", "a2", "a3", "a4"]], + columns=["\u05d0", "\u05d1", "\u05d2", "\u05d3"], + index=["\u05d0", "\u05d1"], + ) + + df.to_csv(buf, encoding="UTF-8") + buf.seek(0) + + df2 = read_csv(buf, index_col=0, encoding="UTF-8") + tm.assert_frame_equal(df, df2) + + def test_to_csv_stringio(self, float_frame): + buf = StringIO() + float_frame.to_csv(buf) + buf.seek(0) + recons = read_csv(buf, index_col=0) + tm.assert_frame_equal(recons, float_frame) + + def test_to_csv_float_format(self): + df = DataFrame( + [[0.123456, 0.234567, 0.567567], [12.32112, 123123.2, 321321.2]], + index=["A", "B"], + columns=["X", "Y", "Z"], + ) + + with tm.ensure_clean() as filename: + df.to_csv(filename, float_format="%.2f") + + rs = read_csv(filename, index_col=0) + xp = DataFrame( + [[0.12, 0.23, 0.57], [12.32, 123123.20, 321321.20]], + index=["A", "B"], + columns=["X", "Y", "Z"], + ) + tm.assert_frame_equal(rs, xp) + + def test_to_csv_float_format_over_decimal(self): + # GH#47436 + df = DataFrame({"a": [0.5, 1.0]}) + result = df.to_csv( + decimal=",", + float_format=lambda x: np.format_float_positional(x, trim="-"), + index=False, + ) + expected_rows = ["a", "0.5", "1"] + expected = tm.convert_rows_list_to_csv_str(expected_rows) + assert result == expected + + def test_to_csv_unicodewriter_quoting(self): + df = DataFrame({"A": [1, 2, 3], "B": ["foo", "bar", "baz"]}) + + buf = StringIO() + df.to_csv(buf, index=False, quoting=csv.QUOTE_NONNUMERIC, encoding="utf-8") + + result = buf.getvalue() + expected_rows = ['"A","B"', '1,"foo"', '2,"bar"', '3,"baz"'] + expected = tm.convert_rows_list_to_csv_str(expected_rows) + assert result == expected + + @pytest.mark.parametrize("encoding", [None, "utf-8"]) + def test_to_csv_quote_none(self, encoding): + # GH4328 + df = DataFrame({"A": ["hello", '{"hello"}']}) + buf = StringIO() + df.to_csv(buf, quoting=csv.QUOTE_NONE, encoding=encoding, index=False) + + result = buf.getvalue() + expected_rows = ["A", "hello", '{"hello"}'] + expected = tm.convert_rows_list_to_csv_str(expected_rows) + assert result == expected + + def test_to_csv_index_no_leading_comma(self): + df = DataFrame({"A": [1, 2, 3], "B": [4, 5, 6]}, index=["one", "two", "three"]) + + buf = StringIO() + df.to_csv(buf, index_label=False) + + expected_rows = ["A,B", "one,1,4", "two,2,5", "three,3,6"] + expected = tm.convert_rows_list_to_csv_str(expected_rows) + assert buf.getvalue() == expected + + def test_to_csv_lineterminators(self): + # see gh-20353 + df = DataFrame({"A": [1, 2, 3], "B": [4, 5, 6]}, index=["one", "two", "three"]) + + with tm.ensure_clean() as path: + # case 1: CRLF as line terminator + df.to_csv(path, lineterminator="\r\n") + expected = b",A,B\r\none,1,4\r\ntwo,2,5\r\nthree,3,6\r\n" + + with open(path, mode="rb") as f: + assert f.read() == expected + + with tm.ensure_clean() as path: + # case 2: LF as line terminator + df.to_csv(path, lineterminator="\n") + expected = b",A,B\none,1,4\ntwo,2,5\nthree,3,6\n" + + with open(path, mode="rb") as f: + assert f.read() == expected + + with tm.ensure_clean() as path: + # case 3: The default line terminator(=os.linesep)(gh-21406) + df.to_csv(path) + os_linesep = os.linesep.encode("utf-8") + expected = ( + b",A,B" + + os_linesep + + b"one,1,4" + + os_linesep + + b"two,2,5" + + os_linesep + + b"three,3,6" + + os_linesep + ) + + with open(path, mode="rb") as f: + assert f.read() == expected + + def test_to_csv_from_csv_categorical(self): + # CSV with categoricals should result in the same output + # as when one would add a "normal" Series/DataFrame. + s = Series(pd.Categorical(["a", "b", "b", "a", "a", "c", "c", "c"])) + s2 = Series(["a", "b", "b", "a", "a", "c", "c", "c"]) + res = StringIO() + + s.to_csv(res, header=False) + exp = StringIO() + + s2.to_csv(exp, header=False) + assert res.getvalue() == exp.getvalue() + + df = DataFrame({"s": s}) + df2 = DataFrame({"s": s2}) + + res = StringIO() + df.to_csv(res) + + exp = StringIO() + df2.to_csv(exp) + + assert res.getvalue() == exp.getvalue() + + def test_to_csv_path_is_none(self, float_frame): + # GH 8215 + # Make sure we return string for consistency with + # Series.to_csv() + csv_str = float_frame.to_csv(path_or_buf=None) + assert isinstance(csv_str, str) + recons = read_csv(StringIO(csv_str), index_col=0) + tm.assert_frame_equal(float_frame, recons) + + @pytest.mark.parametrize( + "df,encoding", + [ + ( + DataFrame( + [[0.123456, 0.234567, 0.567567], [12.32112, 123123.2, 321321.2]], + index=["A", "B"], + columns=["X", "Y", "Z"], + ), + None, + ), + # GH 21241, 21118 + (DataFrame([["abc", "def", "ghi"]], columns=["X", "Y", "Z"]), "ascii"), + (DataFrame(5 * [[123, "你好", "世界"]], columns=["X", "Y", "Z"]), "gb2312"), + ( + DataFrame( + 5 * [[123, "Γειά σου", "Κόσμε"]], # noqa: RUF001 + columns=["X", "Y", "Z"], + ), + "cp737", + ), + ], + ) + def test_to_csv_compression(self, df, encoding, compression): + with tm.ensure_clean() as filename: + df.to_csv(filename, compression=compression, encoding=encoding) + # test the round trip - to_csv -> read_csv + result = read_csv( + filename, compression=compression, index_col=0, encoding=encoding + ) + tm.assert_frame_equal(df, result) + + # test the round trip using file handle - to_csv -> read_csv + with get_handle( + filename, "w", compression=compression, encoding=encoding + ) as handles: + df.to_csv(handles.handle, encoding=encoding) + assert not handles.handle.closed + + result = read_csv( + filename, + compression=compression, + encoding=encoding, + index_col=0, + ).squeeze("columns") + tm.assert_frame_equal(df, result) + + # explicitly make sure file is compressed + with tm.decompress_file(filename, compression) as fh: + text = fh.read().decode(encoding or "utf8") + for col in df.columns: + assert col in text + + with tm.decompress_file(filename, compression) as fh: + tm.assert_frame_equal(df, read_csv(fh, index_col=0, encoding=encoding)) + + def test_to_csv_date_format(self, datetime_frame): + with tm.ensure_clean("__tmp_to_csv_date_format__") as path: + dt_index = datetime_frame.index + datetime_frame = DataFrame( + {"A": dt_index, "B": dt_index.shift(1)}, index=dt_index + ) + datetime_frame.to_csv(path, date_format="%Y%m%d") + + # Check that the data was put in the specified format + test = read_csv(path, index_col=0) + + datetime_frame_int = datetime_frame.map(lambda x: int(x.strftime("%Y%m%d"))) + datetime_frame_int.index = datetime_frame_int.index.map( + lambda x: int(x.strftime("%Y%m%d")) + ) + + tm.assert_frame_equal(test, datetime_frame_int) + + datetime_frame.to_csv(path, date_format="%Y-%m-%d") + + # Check that the data was put in the specified format + test = read_csv(path, index_col=0) + datetime_frame_str = datetime_frame.map(lambda x: x.strftime("%Y-%m-%d")) + datetime_frame_str.index = datetime_frame_str.index.map( + lambda x: x.strftime("%Y-%m-%d") + ) + + tm.assert_frame_equal(test, datetime_frame_str) + + # Check that columns get converted + datetime_frame_columns = datetime_frame.T + datetime_frame_columns.to_csv(path, date_format="%Y%m%d") + + test = read_csv(path, index_col=0) + + datetime_frame_columns = datetime_frame_columns.map( + lambda x: int(x.strftime("%Y%m%d")) + ) + # Columns don't get converted to ints by read_csv + datetime_frame_columns.columns = datetime_frame_columns.columns.map( + lambda x: x.strftime("%Y%m%d") + ) + + tm.assert_frame_equal(test, datetime_frame_columns) + + # test NaTs + nat_index = to_datetime( + ["NaT"] * 10 + ["2000-01-01", "2000-01-01", "2000-01-01"] + ) + nat_frame = DataFrame({"A": nat_index}, index=nat_index) + nat_frame.to_csv(path, date_format="%Y-%m-%d") + + test = read_csv(path, parse_dates=[0, 1], index_col=0) + + tm.assert_frame_equal(test, nat_frame) + + @pytest.mark.parametrize("td", [pd.Timedelta(0), pd.Timedelta("10s")]) + def test_to_csv_with_dst_transitions(self, td): + with tm.ensure_clean("csv_date_format_with_dst") as path: + # make sure we are not failing on transitions + times = date_range( + "2013-10-26 23:00", + "2013-10-27 01:00", + tz="Europe/London", + freq="h", + ambiguous="infer", + ) + i = times + td + i = i._with_freq(None) # freq is not preserved by read_csv + time_range = np.array(range(len(i)), dtype="int64") + df = DataFrame({"A": time_range}, index=i) + df.to_csv(path, index=True) + # we have to reconvert the index as we + # don't parse the tz's + result = read_csv(path, index_col=0) + result.index = to_datetime(result.index, utc=True).tz_convert( + "Europe/London" + ) + tm.assert_frame_equal(result, df) + + def test_to_csv_with_dst_transitions_with_pickle(self): + # GH11619 + idx = date_range("2015-01-01", "2015-12-31", freq="h", tz="Europe/Paris") + idx = idx._with_freq(None) # freq does not round-trip + idx._data._freq = None # otherwise there is trouble on unpickle + df = DataFrame({"values": 1, "idx": idx}, index=idx) + with tm.ensure_clean("csv_date_format_with_dst") as path: + df.to_csv(path, index=True) + result = read_csv(path, index_col=0) + result.index = to_datetime(result.index, utc=True).tz_convert( + "Europe/Paris" + ) + result["idx"] = to_datetime(result["idx"], utc=True).astype( + "datetime64[ns, Europe/Paris]" + ) + tm.assert_frame_equal(result, df) + + # assert working + df.astype(str) + + with tm.ensure_clean("csv_date_format_with_dst") as path: + df.to_pickle(path) + result = pd.read_pickle(path) + tm.assert_frame_equal(result, df) + + def test_to_csv_quoting(self): + df = DataFrame( + { + "c_bool": [True, False], + "c_float": [1.0, 3.2], + "c_int": [42, np.nan], + "c_string": ["a", "b,c"], + } + ) + + expected_rows = [ + ",c_bool,c_float,c_int,c_string", + "0,True,1.0,42.0,a", + '1,False,3.2,,"b,c"', + ] + expected = tm.convert_rows_list_to_csv_str(expected_rows) + + result = df.to_csv() + assert result == expected + + result = df.to_csv(quoting=None) + assert result == expected + + expected_rows = [ + ",c_bool,c_float,c_int,c_string", + "0,True,1.0,42.0,a", + '1,False,3.2,,"b,c"', + ] + expected = tm.convert_rows_list_to_csv_str(expected_rows) + + result = df.to_csv(quoting=csv.QUOTE_MINIMAL) + assert result == expected + + expected_rows = [ + '"","c_bool","c_float","c_int","c_string"', + '"0","True","1.0","42.0","a"', + '"1","False","3.2","","b,c"', + ] + expected = tm.convert_rows_list_to_csv_str(expected_rows) + + result = df.to_csv(quoting=csv.QUOTE_ALL) + assert result == expected + + # see gh-12922, gh-13259: make sure changes to + # the formatters do not break this behaviour + expected_rows = [ + '"","c_bool","c_float","c_int","c_string"', + '0,True,1.0,42.0,"a"', + '1,False,3.2,"","b,c"', + ] + expected = tm.convert_rows_list_to_csv_str(expected_rows) + result = df.to_csv(quoting=csv.QUOTE_NONNUMERIC) + assert result == expected + + msg = "need to escape, but no escapechar set" + with pytest.raises(csv.Error, match=msg): + df.to_csv(quoting=csv.QUOTE_NONE) + + with pytest.raises(csv.Error, match=msg): + df.to_csv(quoting=csv.QUOTE_NONE, escapechar=None) + + expected_rows = [ + ",c_bool,c_float,c_int,c_string", + "0,True,1.0,42.0,a", + "1,False,3.2,,b!,c", + ] + expected = tm.convert_rows_list_to_csv_str(expected_rows) + result = df.to_csv(quoting=csv.QUOTE_NONE, escapechar="!") + assert result == expected + + expected_rows = [ + ",c_bool,c_ffloat,c_int,c_string", + "0,True,1.0,42.0,a", + "1,False,3.2,,bf,c", + ] + expected = tm.convert_rows_list_to_csv_str(expected_rows) + result = df.to_csv(quoting=csv.QUOTE_NONE, escapechar="f") + assert result == expected + + # see gh-3503: quoting Windows line terminators + # presents with encoding? + text_rows = ["a,b,c", '1,"test \r\n",3'] + text = tm.convert_rows_list_to_csv_str(text_rows) + df = read_csv(StringIO(text)) + + buf = StringIO() + df.to_csv(buf, encoding="utf-8", index=False) + assert buf.getvalue() == text + + # xref gh-7791: make sure the quoting parameter is passed through + # with multi-indexes + df = DataFrame({"a": [1, 2], "b": [3, 4], "c": [5, 6]}) + df = df.set_index(["a", "b"]) + + expected_rows = ['"a","b","c"', '"1","3","5"', '"2","4","6"'] + expected = tm.convert_rows_list_to_csv_str(expected_rows) + assert df.to_csv(quoting=csv.QUOTE_ALL) == expected + + def test_period_index_date_overflow(self): + # see gh-15982 + + dates = ["1990-01-01", "2000-01-01", "3005-01-01"] + index = pd.PeriodIndex(dates, freq="D") + + df = DataFrame([4, 5, 6], index=index) + result = df.to_csv() + + expected_rows = [",0", "1990-01-01,4", "2000-01-01,5", "3005-01-01,6"] + expected = tm.convert_rows_list_to_csv_str(expected_rows) + assert result == expected + + date_format = "%m-%d-%Y" + result = df.to_csv(date_format=date_format) + + expected_rows = [",0", "01-01-1990,4", "01-01-2000,5", "01-01-3005,6"] + expected = tm.convert_rows_list_to_csv_str(expected_rows) + assert result == expected + + # Overflow with pd.NaT + dates = ["1990-01-01", NaT, "3005-01-01"] + index = pd.PeriodIndex(dates, freq="D") + + df = DataFrame([4, 5, 6], index=index) + result = df.to_csv() + + expected_rows = [",0", "1990-01-01,4", ",5", "3005-01-01,6"] + expected = tm.convert_rows_list_to_csv_str(expected_rows) + assert result == expected + + def test_multi_index_header(self): + # see gh-5539 + columns = MultiIndex.from_tuples([("a", 1), ("a", 2), ("b", 1), ("b", 2)]) + df = DataFrame([[1, 2, 3, 4], [5, 6, 7, 8]]) + df.columns = columns + + header = ["a", "b", "c", "d"] + result = df.to_csv(header=header) + + expected_rows = [",a,b,c,d", "0,1,2,3,4", "1,5,6,7,8"] + expected = tm.convert_rows_list_to_csv_str(expected_rows) + assert result == expected + + def test_to_csv_single_level_multi_index(self): + # see gh-26303 + index = Index([(1,), (2,), (3,)]) + df = DataFrame([[1, 2, 3]], columns=index) + df = df.reindex(columns=[(1,), (3,)]) + expected = ",1,3\n0,1,3\n" + result = df.to_csv(lineterminator="\n") + tm.assert_almost_equal(result, expected) + + def test_gz_lineend(self): + # GH 25311 + df = DataFrame({"a": [1, 2]}) + expected_rows = ["a", "1", "2"] + expected = tm.convert_rows_list_to_csv_str(expected_rows) + with tm.ensure_clean("__test_gz_lineend.csv.gz") as path: + df.to_csv(path, index=False) + with tm.decompress_file(path, compression="gzip") as f: + result = f.read().decode("utf-8") + + assert result == expected + + def test_to_csv_numpy_16_bug(self): + frame = DataFrame({"a": date_range("1/1/2000", periods=10)}) + + buf = StringIO() + frame.to_csv(buf) + + result = buf.getvalue() + assert "2000-01-01" in result + + def test_to_csv_na_quoting(self): + # GH 15891 + # Normalize carriage return for Windows OS + result = ( + DataFrame([None, None]) + .to_csv(None, header=False, index=False, na_rep="") + .replace("\r\n", "\n") + ) + expected = '""\n""\n' + assert result == expected + + def test_to_csv_categorical_and_ea(self): + # GH#46812 + df = DataFrame({"a": "x", "b": [1, pd.NA]}) + df["b"] = df["b"].astype("Int16") + df["b"] = df["b"].astype("category") + result = df.to_csv() + expected_rows = [",a,b", "0,x,1", "1,x,"] + expected = tm.convert_rows_list_to_csv_str(expected_rows) + assert result == expected + + def test_to_csv_categorical_and_interval(self): + # GH#46297 + df = DataFrame( + { + "a": [ + pd.Interval( + Timestamp("2020-01-01"), + Timestamp("2020-01-02"), + closed="both", + ) + ] + } + ) + df["a"] = df["a"].astype("category") + result = df.to_csv() + expected_rows = [",a", '0,"[2020-01-01 00:00:00, 2020-01-02 00:00:00]"'] + expected = tm.convert_rows_list_to_csv_str(expected_rows) + assert result == expected diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_to_dict.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_to_dict.py new file mode 100644 index 0000000000000000000000000000000000000000..570f85a4a31ee5f210a6ccd9c8c52a95b5c09b8d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_to_dict.py @@ -0,0 +1,535 @@ +from collections import ( + OrderedDict, + defaultdict, +) +from datetime import datetime + +import numpy as np +import pytest +import pytz + +from pandas import ( + NA, + DataFrame, + Index, + Interval, + MultiIndex, + Period, + Series, + Timedelta, + Timestamp, +) +import pandas._testing as tm + + +class TestDataFrameToDict: + def test_to_dict_timestamp(self): + # GH#11247 + # split/records producing np.datetime64 rather than Timestamps + # on datetime64[ns] dtypes only + + tsmp = Timestamp("20130101") + test_data = DataFrame({"A": [tsmp, tsmp], "B": [tsmp, tsmp]}) + test_data_mixed = DataFrame({"A": [tsmp, tsmp], "B": [1, 2]}) + + expected_records = [{"A": tsmp, "B": tsmp}, {"A": tsmp, "B": tsmp}] + expected_records_mixed = [{"A": tsmp, "B": 1}, {"A": tsmp, "B": 2}] + + assert test_data.to_dict(orient="records") == expected_records + assert test_data_mixed.to_dict(orient="records") == expected_records_mixed + + expected_series = { + "A": Series([tsmp, tsmp], name="A"), + "B": Series([tsmp, tsmp], name="B"), + } + expected_series_mixed = { + "A": Series([tsmp, tsmp], name="A"), + "B": Series([1, 2], name="B"), + } + + tm.assert_dict_equal(test_data.to_dict(orient="series"), expected_series) + tm.assert_dict_equal( + test_data_mixed.to_dict(orient="series"), expected_series_mixed + ) + + expected_split = { + "index": [0, 1], + "data": [[tsmp, tsmp], [tsmp, tsmp]], + "columns": ["A", "B"], + } + expected_split_mixed = { + "index": [0, 1], + "data": [[tsmp, 1], [tsmp, 2]], + "columns": ["A", "B"], + } + + tm.assert_dict_equal(test_data.to_dict(orient="split"), expected_split) + tm.assert_dict_equal( + test_data_mixed.to_dict(orient="split"), expected_split_mixed + ) + + def test_to_dict_index_not_unique_with_index_orient(self): + # GH#22801 + # Data loss when indexes are not unique. Raise ValueError. + df = DataFrame({"a": [1, 2], "b": [0.5, 0.75]}, index=["A", "A"]) + msg = "DataFrame index must be unique for orient='index'" + with pytest.raises(ValueError, match=msg): + df.to_dict(orient="index") + + def test_to_dict_invalid_orient(self): + df = DataFrame({"A": [0, 1]}) + msg = "orient 'xinvalid' not understood" + with pytest.raises(ValueError, match=msg): + df.to_dict(orient="xinvalid") + + @pytest.mark.parametrize("orient", ["d", "l", "r", "sp", "s", "i"]) + def test_to_dict_short_orient_raises(self, orient): + # GH#32515 + df = DataFrame({"A": [0, 1]}) + with pytest.raises(ValueError, match="not understood"): + df.to_dict(orient=orient) + + @pytest.mark.parametrize("mapping", [dict, defaultdict(list), OrderedDict]) + def test_to_dict(self, mapping): + # orient= should only take the listed options + # see GH#32515 + test_data = {"A": {"1": 1, "2": 2}, "B": {"1": "1", "2": "2", "3": "3"}} + + # GH#16122 + recons_data = DataFrame(test_data).to_dict(into=mapping) + + for k, v in test_data.items(): + for k2, v2 in v.items(): + assert v2 == recons_data[k][k2] + + recons_data = DataFrame(test_data).to_dict("list", into=mapping) + + for k, v in test_data.items(): + for k2, v2 in v.items(): + assert v2 == recons_data[k][int(k2) - 1] + + recons_data = DataFrame(test_data).to_dict("series", into=mapping) + + for k, v in test_data.items(): + for k2, v2 in v.items(): + assert v2 == recons_data[k][k2] + + recons_data = DataFrame(test_data).to_dict("split", into=mapping) + expected_split = { + "columns": ["A", "B"], + "index": ["1", "2", "3"], + "data": [[1.0, "1"], [2.0, "2"], [np.nan, "3"]], + } + tm.assert_dict_equal(recons_data, expected_split) + + recons_data = DataFrame(test_data).to_dict("records", into=mapping) + expected_records = [ + {"A": 1.0, "B": "1"}, + {"A": 2.0, "B": "2"}, + {"A": np.nan, "B": "3"}, + ] + assert isinstance(recons_data, list) + assert len(recons_data) == 3 + for left, right in zip(recons_data, expected_records): + tm.assert_dict_equal(left, right) + + # GH#10844 + recons_data = DataFrame(test_data).to_dict("index") + + for k, v in test_data.items(): + for k2, v2 in v.items(): + assert v2 == recons_data[k2][k] + + df = DataFrame(test_data) + df["duped"] = df[df.columns[0]] + recons_data = df.to_dict("index") + comp_data = test_data.copy() + comp_data["duped"] = comp_data[df.columns[0]] + for k, v in comp_data.items(): + for k2, v2 in v.items(): + assert v2 == recons_data[k2][k] + + @pytest.mark.parametrize("mapping", [list, defaultdict, []]) + def test_to_dict_errors(self, mapping): + # GH#16122 + df = DataFrame(np.random.default_rng(2).standard_normal((3, 3))) + msg = "|".join( + [ + "unsupported type: ", + r"to_dict\(\) only accepts initialized defaultdicts", + ] + ) + with pytest.raises(TypeError, match=msg): + df.to_dict(into=mapping) + + def test_to_dict_not_unique_warning(self): + # GH#16927: When converting to a dict, if a column has a non-unique name + # it will be dropped, throwing a warning. + df = DataFrame([[1, 2, 3]], columns=["a", "a", "b"]) + with tm.assert_produces_warning(UserWarning): + df.to_dict() + + @pytest.mark.filterwarnings("ignore::UserWarning") + @pytest.mark.parametrize( + "orient,expected", + [ + ("list", {"A": [2, 5], "B": [3, 6]}), + ("dict", {"A": {0: 2, 1: 5}, "B": {0: 3, 1: 6}}), + ], + ) + def test_to_dict_not_unique(self, orient, expected): + # GH#54824: This is to make sure that dataframes with non-unique column + # would have uniform behavior throughout different orients + df = DataFrame([[1, 2, 3], [4, 5, 6]], columns=["A", "A", "B"]) + result = df.to_dict(orient) + assert result == expected + + # orient - orient argument to to_dict function + # item_getter - function for extracting value from + # the resulting dict using column name and index + @pytest.mark.parametrize( + "orient,item_getter", + [ + ("dict", lambda d, col, idx: d[col][idx]), + ("records", lambda d, col, idx: d[idx][col]), + ("list", lambda d, col, idx: d[col][idx]), + ("split", lambda d, col, idx: d["data"][idx][d["columns"].index(col)]), + ("index", lambda d, col, idx: d[idx][col]), + ], + ) + def test_to_dict_box_scalars(self, orient, item_getter): + # GH#14216, GH#23753 + # make sure that we are boxing properly + df = DataFrame({"a": [1, 2], "b": [0.1, 0.2]}) + result = df.to_dict(orient=orient) + assert isinstance(item_getter(result, "a", 0), int) + assert isinstance(item_getter(result, "b", 0), float) + + def test_to_dict_tz(self): + # GH#18372 When converting to dict with orient='records' columns of + # datetime that are tz-aware were not converted to required arrays + data = [ + (datetime(2017, 11, 18, 21, 53, 0, 219225, tzinfo=pytz.utc),), + (datetime(2017, 11, 18, 22, 6, 30, 61810, tzinfo=pytz.utc),), + ] + df = DataFrame(list(data), columns=["d"]) + + result = df.to_dict(orient="records") + expected = [ + {"d": Timestamp("2017-11-18 21:53:00.219225+0000", tz=pytz.utc)}, + {"d": Timestamp("2017-11-18 22:06:30.061810+0000", tz=pytz.utc)}, + ] + tm.assert_dict_equal(result[0], expected[0]) + tm.assert_dict_equal(result[1], expected[1]) + + @pytest.mark.parametrize( + "into, expected", + [ + ( + dict, + { + 0: {"int_col": 1, "float_col": 1.0}, + 1: {"int_col": 2, "float_col": 2.0}, + 2: {"int_col": 3, "float_col": 3.0}, + }, + ), + ( + OrderedDict, + OrderedDict( + [ + (0, {"int_col": 1, "float_col": 1.0}), + (1, {"int_col": 2, "float_col": 2.0}), + (2, {"int_col": 3, "float_col": 3.0}), + ] + ), + ), + ( + defaultdict(dict), + defaultdict( + dict, + { + 0: {"int_col": 1, "float_col": 1.0}, + 1: {"int_col": 2, "float_col": 2.0}, + 2: {"int_col": 3, "float_col": 3.0}, + }, + ), + ), + ], + ) + def test_to_dict_index_dtypes(self, into, expected): + # GH#18580 + # When using to_dict(orient='index') on a dataframe with int + # and float columns only the int columns were cast to float + + df = DataFrame({"int_col": [1, 2, 3], "float_col": [1.0, 2.0, 3.0]}) + + result = df.to_dict(orient="index", into=into) + cols = ["int_col", "float_col"] + result = DataFrame.from_dict(result, orient="index")[cols] + expected = DataFrame.from_dict(expected, orient="index")[cols] + tm.assert_frame_equal(result, expected) + + def test_to_dict_numeric_names(self): + # GH#24940 + df = DataFrame({str(i): [i] for i in range(5)}) + result = set(df.to_dict("records")[0].keys()) + expected = set(df.columns) + assert result == expected + + def test_to_dict_wide(self): + # GH#24939 + df = DataFrame({(f"A_{i:d}"): [i] for i in range(256)}) + result = df.to_dict("records")[0] + expected = {f"A_{i:d}": i for i in range(256)} + assert result == expected + + @pytest.mark.parametrize( + "data,dtype", + ( + ([True, True, False], bool), + [ + [ + datetime(2018, 1, 1), + datetime(2019, 2, 2), + datetime(2020, 3, 3), + ], + Timestamp, + ], + [[1.0, 2.0, 3.0], float], + [[1, 2, 3], int], + [["X", "Y", "Z"], str], + ), + ) + def test_to_dict_orient_dtype(self, data, dtype): + # GH22620 & GH21256 + + df = DataFrame({"a": data}) + d = df.to_dict(orient="records") + assert all(type(record["a"]) is dtype for record in d) + + @pytest.mark.parametrize( + "data,expected_dtype", + ( + [np.uint64(2), int], + [np.int64(-9), int], + [np.float64(1.1), float], + [np.bool_(True), bool], + [np.datetime64("2005-02-25"), Timestamp], + ), + ) + def test_to_dict_scalar_constructor_orient_dtype(self, data, expected_dtype): + # GH22620 & GH21256 + + df = DataFrame({"a": data}, index=[0]) + d = df.to_dict(orient="records") + result = type(d[0]["a"]) + assert result is expected_dtype + + def test_to_dict_mixed_numeric_frame(self): + # GH 12859 + df = DataFrame({"a": [1.0], "b": [9.0]}) + result = df.reset_index().to_dict("records") + expected = [{"index": 0, "a": 1.0, "b": 9.0}] + assert result == expected + + @pytest.mark.parametrize( + "index", + [ + None, + Index(["aa", "bb"]), + Index(["aa", "bb"], name="cc"), + MultiIndex.from_tuples([("a", "b"), ("a", "c")]), + MultiIndex.from_tuples([("a", "b"), ("a", "c")], names=["n1", "n2"]), + ], + ) + @pytest.mark.parametrize( + "columns", + [ + ["x", "y"], + Index(["x", "y"]), + Index(["x", "y"], name="z"), + MultiIndex.from_tuples([("x", 1), ("y", 2)]), + MultiIndex.from_tuples([("x", 1), ("y", 2)], names=["z1", "z2"]), + ], + ) + def test_to_dict_orient_tight(self, index, columns): + df = DataFrame.from_records( + [[1, 3], [2, 4]], + columns=columns, + index=index, + ) + roundtrip = DataFrame.from_dict(df.to_dict(orient="tight"), orient="tight") + + tm.assert_frame_equal(df, roundtrip) + + @pytest.mark.parametrize( + "orient", + ["dict", "list", "split", "records", "index", "tight"], + ) + @pytest.mark.parametrize( + "data,expected_types", + ( + ( + { + "a": [np.int64(1), 1, np.int64(3)], + "b": [np.float64(1.0), 2.0, np.float64(3.0)], + "c": [np.float64(1.0), 2, np.int64(3)], + "d": [np.float64(1.0), "a", np.int64(3)], + "e": [np.float64(1.0), ["a"], np.int64(3)], + "f": [np.float64(1.0), ("a",), np.int64(3)], + }, + { + "a": [int, int, int], + "b": [float, float, float], + "c": [float, float, float], + "d": [float, str, int], + "e": [float, list, int], + "f": [float, tuple, int], + }, + ), + ( + { + "a": [1, 2, 3], + "b": [1.1, 2.2, 3.3], + }, + { + "a": [int, int, int], + "b": [float, float, float], + }, + ), + ( # Make sure we have one df which is all object type cols + { + "a": [1, "hello", 3], + "b": [1.1, "world", 3.3], + }, + { + "a": [int, str, int], + "b": [float, str, float], + }, + ), + ), + ) + def test_to_dict_returns_native_types(self, orient, data, expected_types): + # GH 46751 + # Tests we get back native types for all orient types + df = DataFrame(data) + result = df.to_dict(orient) + if orient == "dict": + assertion_iterator = ( + (i, key, value) + for key, index_value_map in result.items() + for i, value in index_value_map.items() + ) + elif orient == "list": + assertion_iterator = ( + (i, key, value) + for key, values in result.items() + for i, value in enumerate(values) + ) + elif orient in {"split", "tight"}: + assertion_iterator = ( + (i, key, result["data"][i][j]) + for i in result["index"] + for j, key in enumerate(result["columns"]) + ) + elif orient == "records": + assertion_iterator = ( + (i, key, value) + for i, record in enumerate(result) + for key, value in record.items() + ) + elif orient == "index": + assertion_iterator = ( + (i, key, value) + for i, record in result.items() + for key, value in record.items() + ) + + for i, key, value in assertion_iterator: + assert value == data[key][i] + assert type(value) is expected_types[key][i] + + @pytest.mark.parametrize("orient", ["dict", "list", "series", "records", "index"]) + def test_to_dict_index_false_error(self, orient): + # GH#46398 + df = DataFrame({"col1": [1, 2], "col2": [3, 4]}, index=["row1", "row2"]) + msg = "'index=False' is only valid when 'orient' is 'split' or 'tight'" + with pytest.raises(ValueError, match=msg): + df.to_dict(orient=orient, index=False) + + @pytest.mark.parametrize( + "orient, expected", + [ + ("split", {"columns": ["col1", "col2"], "data": [[1, 3], [2, 4]]}), + ( + "tight", + { + "columns": ["col1", "col2"], + "data": [[1, 3], [2, 4]], + "column_names": [None], + }, + ), + ], + ) + def test_to_dict_index_false(self, orient, expected): + # GH#46398 + df = DataFrame({"col1": [1, 2], "col2": [3, 4]}, index=["row1", "row2"]) + result = df.to_dict(orient=orient, index=False) + tm.assert_dict_equal(result, expected) + + @pytest.mark.parametrize( + "orient, expected", + [ + ("dict", {"a": {0: 1, 1: None}}), + ("list", {"a": [1, None]}), + ("split", {"index": [0, 1], "columns": ["a"], "data": [[1], [None]]}), + ( + "tight", + { + "index": [0, 1], + "columns": ["a"], + "data": [[1], [None]], + "index_names": [None], + "column_names": [None], + }, + ), + ("records", [{"a": 1}, {"a": None}]), + ("index", {0: {"a": 1}, 1: {"a": None}}), + ], + ) + def test_to_dict_na_to_none(self, orient, expected): + # GH#50795 + df = DataFrame({"a": [1, NA]}, dtype="Int64") + result = df.to_dict(orient=orient) + assert result == expected + + def test_to_dict_masked_native_python(self): + # GH#34665 + df = DataFrame({"a": Series([1, 2], dtype="Int64"), "B": 1}) + result = df.to_dict(orient="records") + assert isinstance(result[0]["a"], int) + + df = DataFrame({"a": Series([1, NA], dtype="Int64"), "B": 1}) + result = df.to_dict(orient="records") + assert isinstance(result[0]["a"], int) + + def test_to_dict_pos_args_deprecation(self): + # GH-54229 + df = DataFrame({"a": [1, 2, 3]}) + msg = ( + r"Starting with pandas version 3.0 all arguments of to_dict except for the " + r"argument 'orient' will be keyword-only." + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + df.to_dict("records", {}) + + +@pytest.mark.parametrize( + "val", [Timestamp(2020, 1, 1), Timedelta(1), Period("2020"), Interval(1, 2)] +) +def test_to_dict_list_pd_scalars(val): + # GH 54824 + df = DataFrame({"a": [val]}) + result = df.to_dict(orient="list") + expected = {"a": [val]} + assert result == expected diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_to_dict_of_blocks.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_to_dict_of_blocks.py new file mode 100644 index 0000000000000000000000000000000000000000..42858aa412810651d766b03f12af523e37315211 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_to_dict_of_blocks.py @@ -0,0 +1,79 @@ +import numpy as np +import pytest + +from pandas._config import using_string_dtype + +import pandas.util._test_decorators as td + +from pandas import ( + DataFrame, + MultiIndex, +) +import pandas._testing as tm +from pandas.core.arrays import NumpyExtensionArray + +pytestmark = td.skip_array_manager_invalid_test + + +class TestToDictOfBlocks: + @pytest.mark.filterwarnings("ignore:Setting a value on a view:FutureWarning") + def test_no_copy_blocks(self, float_frame, using_copy_on_write): + # GH#9607 + df = DataFrame(float_frame, copy=True) + column = df.columns[0] + + _last_df = None + # use the copy=False, change a column + blocks = df._to_dict_of_blocks() + for _df in blocks.values(): + _last_df = _df + if column in _df: + _df.loc[:, column] = _df[column] + 1 + + if not using_copy_on_write: + # make sure we did change the original DataFrame + assert _last_df is not None and _last_df[column].equals(df[column]) + else: + assert _last_df is not None and not _last_df[column].equals(df[column]) + + +@pytest.mark.xfail(using_string_dtype(), reason="TODO(infer_string)") +def test_to_dict_of_blocks_item_cache(using_copy_on_write, warn_copy_on_write): + # Calling to_dict_of_blocks should not poison item_cache + df = DataFrame({"a": [1, 2, 3, 4], "b": ["a", "b", "c", "d"]}) + df["c"] = NumpyExtensionArray(np.array([1, 2, None, 3], dtype=object)) + mgr = df._mgr + assert len(mgr.blocks) == 3 # i.e. not consolidated + + ser = df["b"] # populations item_cache["b"] + + df._to_dict_of_blocks() + + if using_copy_on_write: + with pytest.raises(ValueError, match="read-only"): + ser.values[0] = "foo" + elif warn_copy_on_write: + ser.values[0] = "foo" + assert df.loc[0, "b"] == "foo" + # with warning mode, the item cache is disabled + assert df["b"] is not ser + else: + # Check that the to_dict_of_blocks didn't break link between ser and df + ser.values[0] = "foo" + assert df.loc[0, "b"] == "foo" + + assert df["b"] is ser + + +def test_set_change_dtype_slice(): + # GH#8850 + cols = MultiIndex.from_tuples([("1st", "a"), ("2nd", "b"), ("3rd", "c")]) + df = DataFrame([[1.0, 2, 3], [4.0, 5, 6]], columns=cols) + df["2nd"] = df["2nd"] * 2.0 + + blocks = df._to_dict_of_blocks() + assert sorted(blocks.keys()) == ["float64", "int64"] + tm.assert_frame_equal( + blocks["float64"], DataFrame([[1.0, 4.0], [4.0, 10.0]], columns=cols[:2]) + ) + tm.assert_frame_equal(blocks["int64"], DataFrame([[3], [6]], columns=cols[2:])) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_to_numpy.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_to_numpy.py new file mode 100644 index 0000000000000000000000000000000000000000..0731750aed0cf4b46fe7598b87d459036bc68146 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_to_numpy.py @@ -0,0 +1,53 @@ +import numpy as np +import pytest + +import pandas.util._test_decorators as td + +from pandas import ( + DataFrame, + Timestamp, +) +import pandas._testing as tm + + +class TestToNumpy: + def test_to_numpy(self): + df = DataFrame({"A": [1, 2], "B": [3, 4.5]}) + expected = np.array([[1, 3], [2, 4.5]]) + result = df.to_numpy() + tm.assert_numpy_array_equal(result, expected) + + def test_to_numpy_dtype(self): + df = DataFrame({"A": [1, 2], "B": [3, 4.5]}) + expected = np.array([[1, 3], [2, 4]], dtype="int64") + result = df.to_numpy(dtype="int64") + tm.assert_numpy_array_equal(result, expected) + + @td.skip_array_manager_invalid_test + def test_to_numpy_copy(self, using_copy_on_write): + arr = np.random.default_rng(2).standard_normal((4, 3)) + df = DataFrame(arr) + if using_copy_on_write: + assert df.values.base is not arr + assert df.to_numpy(copy=False).base is df.values.base + else: + assert df.values.base is arr + assert df.to_numpy(copy=False).base is arr + assert df.to_numpy(copy=True).base is not arr + + # we still don't want a copy when na_value=np.nan is passed, + # and that can be respected because we are already numpy-float + if using_copy_on_write: + assert df.to_numpy(copy=False).base is df.values.base + else: + assert df.to_numpy(copy=False, na_value=np.nan).base is arr + + @pytest.mark.filterwarnings( + "ignore:invalid value encountered in cast:RuntimeWarning" + ) + def test_to_numpy_mixed_dtype_to_str(self): + # https://github.com/pandas-dev/pandas/issues/35455 + df = DataFrame([[Timestamp("2020-01-01 00:00:00"), 100.0]]) + result = df.to_numpy(dtype=str) + expected = np.array([["2020-01-01 00:00:00", "100.0"]], dtype=str) + tm.assert_numpy_array_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_to_period.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_to_period.py new file mode 100644 index 0000000000000000000000000000000000000000..6a3e6b8c0e0596cfad38bfd1e02fd1b0f34e4ddb --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_to_period.py @@ -0,0 +1,89 @@ +import numpy as np +import pytest + +from pandas import ( + DataFrame, + DatetimeIndex, + PeriodIndex, + Series, + date_range, + period_range, +) +import pandas._testing as tm + + +class TestToPeriod: + def test_to_period(self, frame_or_series): + K = 5 + + dr = date_range("1/1/2000", "1/1/2001", freq="D") + obj = DataFrame( + np.random.default_rng(2).standard_normal((len(dr), K)), + index=dr, + columns=["A", "B", "C", "D", "E"], + ) + obj["mix"] = "a" + obj = tm.get_obj(obj, frame_or_series) + + pts = obj.to_period() + exp = obj.copy() + exp.index = period_range("1/1/2000", "1/1/2001") + tm.assert_equal(pts, exp) + + pts = obj.to_period("M") + exp.index = exp.index.asfreq("M") + tm.assert_equal(pts, exp) + + def test_to_period_without_freq(self, frame_or_series): + # GH#7606 without freq + idx = DatetimeIndex(["2011-01-01", "2011-01-02", "2011-01-03", "2011-01-04"]) + exp_idx = PeriodIndex( + ["2011-01-01", "2011-01-02", "2011-01-03", "2011-01-04"], freq="D" + ) + + obj = DataFrame( + np.random.default_rng(2).standard_normal((4, 4)), index=idx, columns=idx + ) + obj = tm.get_obj(obj, frame_or_series) + expected = obj.copy() + expected.index = exp_idx + tm.assert_equal(obj.to_period(), expected) + + if frame_or_series is DataFrame: + expected = obj.copy() + expected.columns = exp_idx + tm.assert_frame_equal(obj.to_period(axis=1), expected) + + def test_to_period_columns(self): + dr = date_range("1/1/2000", "1/1/2001") + df = DataFrame(np.random.default_rng(2).standard_normal((len(dr), 5)), index=dr) + df["mix"] = "a" + + df = df.T + pts = df.to_period(axis=1) + exp = df.copy() + exp.columns = period_range("1/1/2000", "1/1/2001") + tm.assert_frame_equal(pts, exp) + + pts = df.to_period("M", axis=1) + tm.assert_index_equal(pts.columns, exp.columns.asfreq("M")) + + def test_to_period_invalid_axis(self): + dr = date_range("1/1/2000", "1/1/2001") + df = DataFrame(np.random.default_rng(2).standard_normal((len(dr), 5)), index=dr) + df["mix"] = "a" + + msg = "No axis named 2 for object type DataFrame" + with pytest.raises(ValueError, match=msg): + df.to_period(axis=2) + + def test_to_period_raises(self, index, frame_or_series): + # https://github.com/pandas-dev/pandas/issues/33327 + obj = Series(index=index, dtype=object) + if frame_or_series is DataFrame: + obj = obj.to_frame() + + if not isinstance(index, DatetimeIndex): + msg = f"unsupported Type {type(index).__name__}" + with pytest.raises(TypeError, match=msg): + obj.to_period() diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_to_records.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_to_records.py new file mode 100644 index 0000000000000000000000000000000000000000..fab90b112fa94c9aa6bf6d8b9f0045e82f3ec92d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_to_records.py @@ -0,0 +1,523 @@ +from collections import abc +import email +from email.parser import Parser + +import numpy as np +import pytest + +from pandas import ( + CategoricalDtype, + DataFrame, + MultiIndex, + Series, + Timestamp, + date_range, +) +import pandas._testing as tm + + +class TestDataFrameToRecords: + def test_to_records_timeseries(self): + index = date_range("1/1/2000", periods=10) + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 3)), + index=index, + columns=["a", "b", "c"], + ) + + result = df.to_records() + assert result["index"].dtype == "M8[ns]" + + result = df.to_records(index=False) + + def test_to_records_dt64(self): + df = DataFrame( + [["one", "two", "three"], ["four", "five", "six"]], + index=date_range("2012-01-01", "2012-01-02"), + ) + + expected = df.index.values[0] + result = df.to_records()["index"][0] + assert expected == result + + def test_to_records_dt64tz_column(self): + # GH#32535 dont less tz in to_records + df = DataFrame({"A": date_range("2012-01-01", "2012-01-02", tz="US/Eastern")}) + + result = df.to_records() + + assert result.dtype["A"] == object + val = result[0][1] + assert isinstance(val, Timestamp) + assert val == df.loc[0, "A"] + + def test_to_records_with_multindex(self): + # GH#3189 + index = [ + ["bar", "bar", "baz", "baz", "foo", "foo", "qux", "qux"], + ["one", "two", "one", "two", "one", "two", "one", "two"], + ] + data = np.zeros((8, 4)) + df = DataFrame(data, index=index) + r = df.to_records(index=True)["level_0"] + assert "bar" in r + assert "one" not in r + + def test_to_records_with_Mapping_type(self): + abc.Mapping.register(email.message.Message) + + headers = Parser().parsestr( + "From: \n" + "To: \n" + "Subject: Test message\n" + "\n" + "Body would go here\n" + ) + + frame = DataFrame.from_records([headers]) + all(x in frame for x in ["Type", "Subject", "From"]) + + def test_to_records_floats(self): + df = DataFrame(np.random.default_rng(2).random((10, 10))) + df.to_records() + + def test_to_records_index_name(self): + df = DataFrame(np.random.default_rng(2).standard_normal((3, 3))) + df.index.name = "X" + rs = df.to_records() + assert "X" in rs.dtype.fields + + df = DataFrame(np.random.default_rng(2).standard_normal((3, 3))) + rs = df.to_records() + assert "index" in rs.dtype.fields + + df.index = MultiIndex.from_tuples([("a", "x"), ("a", "y"), ("b", "z")]) + df.index.names = ["A", None] + result = df.to_records() + expected = np.rec.fromarrays( + [np.array(["a", "a", "b"]), np.array(["x", "y", "z"])] + + [np.asarray(df.iloc[:, i]) for i in range(3)], + dtype={ + "names": ["A", "level_1", "0", "1", "2"], + "formats": [ + "O", + "O", + f"{tm.ENDIAN}f8", + f"{tm.ENDIAN}f8", + f"{tm.ENDIAN}f8", + ], + }, + ) + tm.assert_numpy_array_equal(result, expected) + + def test_to_records_with_unicode_index(self): + # GH#13172 + # unicode_literals conflict with to_records + result = DataFrame([{"a": "x", "b": "y"}]).set_index("a").to_records() + expected = np.rec.array([("x", "y")], dtype=[("a", "O"), ("b", "O")]) + tm.assert_almost_equal(result, expected) + + def test_to_records_index_dtype(self): + # GH 47263: consistent data types for Index and MultiIndex + df = DataFrame( + { + 1: date_range("2022-01-01", periods=2), + 2: date_range("2022-01-01", periods=2), + 3: date_range("2022-01-01", periods=2), + } + ) + + expected = np.rec.array( + [ + ("2022-01-01", "2022-01-01", "2022-01-01"), + ("2022-01-02", "2022-01-02", "2022-01-02"), + ], + dtype=[ + ("1", f"{tm.ENDIAN}M8[ns]"), + ("2", f"{tm.ENDIAN}M8[ns]"), + ("3", f"{tm.ENDIAN}M8[ns]"), + ], + ) + + result = df.to_records(index=False) + tm.assert_almost_equal(result, expected) + + result = df.set_index(1).to_records(index=True) + tm.assert_almost_equal(result, expected) + + result = df.set_index([1, 2]).to_records(index=True) + tm.assert_almost_equal(result, expected) + + def test_to_records_with_unicode_column_names(self): + # xref issue: https://github.com/numpy/numpy/issues/2407 + # Issue GH#11879. to_records used to raise an exception when used + # with column names containing non-ascii characters in Python 2 + result = DataFrame(data={"accented_name_é": [1.0]}).to_records() + + # Note that numpy allows for unicode field names but dtypes need + # to be specified using dictionary instead of list of tuples. + expected = np.rec.array( + [(0, 1.0)], + dtype={"names": ["index", "accented_name_é"], "formats": ["=i8", "=f8"]}, + ) + tm.assert_almost_equal(result, expected) + + def test_to_records_with_categorical(self): + # GH#8626 + + # dict creation + df = DataFrame({"A": list("abc")}, dtype="category") + expected = Series(list("abc"), dtype="category", name="A") + tm.assert_series_equal(df["A"], expected) + + # list-like creation + df = DataFrame(list("abc"), dtype="category") + expected = Series(list("abc"), dtype="category", name=0) + tm.assert_series_equal(df[0], expected) + + # to record array + # this coerces + result = df.to_records() + expected = np.rec.array( + [(0, "a"), (1, "b"), (2, "c")], dtype=[("index", "=i8"), ("0", "O")] + ) + tm.assert_almost_equal(result, expected) + + @pytest.mark.parametrize( + "kwargs,expected", + [ + # No dtypes --> default to array dtypes. + ( + {}, + np.rec.array( + [(0, 1, 0.2, "a"), (1, 2, 1.5, "bc")], + dtype=[ + ("index", f"{tm.ENDIAN}i8"), + ("A", f"{tm.ENDIAN}i8"), + ("B", f"{tm.ENDIAN}f8"), + ("C", "O"), + ], + ), + ), + # Should have no effect in this case. + ( + {"index": True}, + np.rec.array( + [(0, 1, 0.2, "a"), (1, 2, 1.5, "bc")], + dtype=[ + ("index", f"{tm.ENDIAN}i8"), + ("A", f"{tm.ENDIAN}i8"), + ("B", f"{tm.ENDIAN}f8"), + ("C", "O"), + ], + ), + ), + # Column dtype applied across the board. Index unaffected. + ( + {"column_dtypes": f"{tm.ENDIAN}U4"}, + np.rec.array( + [("0", "1", "0.2", "a"), ("1", "2", "1.5", "bc")], + dtype=[ + ("index", f"{tm.ENDIAN}i8"), + ("A", f"{tm.ENDIAN}U4"), + ("B", f"{tm.ENDIAN}U4"), + ("C", f"{tm.ENDIAN}U4"), + ], + ), + ), + # Index dtype applied across the board. Columns unaffected. + ( + {"index_dtypes": f"{tm.ENDIAN}U1"}, + np.rec.array( + [("0", 1, 0.2, "a"), ("1", 2, 1.5, "bc")], + dtype=[ + ("index", f"{tm.ENDIAN}U1"), + ("A", f"{tm.ENDIAN}i8"), + ("B", f"{tm.ENDIAN}f8"), + ("C", "O"), + ], + ), + ), + # Pass in a type instance. + ( + {"column_dtypes": str}, + np.rec.array( + [("0", "1", "0.2", "a"), ("1", "2", "1.5", "bc")], + dtype=[ + ("index", f"{tm.ENDIAN}i8"), + ("A", f"{tm.ENDIAN}U"), + ("B", f"{tm.ENDIAN}U"), + ("C", f"{tm.ENDIAN}U"), + ], + ), + ), + # Pass in a dtype instance. + ( + {"column_dtypes": np.dtype(np.str_)}, + np.rec.array( + [("0", "1", "0.2", "a"), ("1", "2", "1.5", "bc")], + dtype=[ + ("index", f"{tm.ENDIAN}i8"), + ("A", f"{tm.ENDIAN}U"), + ("B", f"{tm.ENDIAN}U"), + ("C", f"{tm.ENDIAN}U"), + ], + ), + ), + # Pass in a dictionary (name-only). + ( + { + "column_dtypes": { + "A": np.int8, + "B": np.float32, + "C": f"{tm.ENDIAN}U2", + } + }, + np.rec.array( + [("0", "1", "0.2", "a"), ("1", "2", "1.5", "bc")], + dtype=[ + ("index", f"{tm.ENDIAN}i8"), + ("A", "i1"), + ("B", f"{tm.ENDIAN}f4"), + ("C", f"{tm.ENDIAN}U2"), + ], + ), + ), + # Pass in a dictionary (indices-only). + ( + {"index_dtypes": {0: "int16"}}, + np.rec.array( + [(0, 1, 0.2, "a"), (1, 2, 1.5, "bc")], + dtype=[ + ("index", "i2"), + ("A", f"{tm.ENDIAN}i8"), + ("B", f"{tm.ENDIAN}f8"), + ("C", "O"), + ], + ), + ), + # Ignore index mappings if index is not True. + ( + {"index": False, "index_dtypes": f"{tm.ENDIAN}U2"}, + np.rec.array( + [(1, 0.2, "a"), (2, 1.5, "bc")], + dtype=[ + ("A", f"{tm.ENDIAN}i8"), + ("B", f"{tm.ENDIAN}f8"), + ("C", "O"), + ], + ), + ), + # Non-existent names / indices in mapping should not error. + ( + {"index_dtypes": {0: "int16", "not-there": "float32"}}, + np.rec.array( + [(0, 1, 0.2, "a"), (1, 2, 1.5, "bc")], + dtype=[ + ("index", "i2"), + ("A", f"{tm.ENDIAN}i8"), + ("B", f"{tm.ENDIAN}f8"), + ("C", "O"), + ], + ), + ), + # Names / indices not in mapping default to array dtype. + ( + {"column_dtypes": {"A": np.int8, "B": np.float32}}, + np.rec.array( + [("0", "1", "0.2", "a"), ("1", "2", "1.5", "bc")], + dtype=[ + ("index", f"{tm.ENDIAN}i8"), + ("A", "i1"), + ("B", f"{tm.ENDIAN}f4"), + ("C", "O"), + ], + ), + ), + # Names / indices not in dtype mapping default to array dtype. + ( + {"column_dtypes": {"A": np.dtype("int8"), "B": np.dtype("float32")}}, + np.rec.array( + [("0", "1", "0.2", "a"), ("1", "2", "1.5", "bc")], + dtype=[ + ("index", f"{tm.ENDIAN}i8"), + ("A", "i1"), + ("B", f"{tm.ENDIAN}f4"), + ("C", "O"), + ], + ), + ), + # Mixture of everything. + ( + { + "column_dtypes": {"A": np.int8, "B": np.float32}, + "index_dtypes": f"{tm.ENDIAN}U2", + }, + np.rec.array( + [("0", "1", "0.2", "a"), ("1", "2", "1.5", "bc")], + dtype=[ + ("index", f"{tm.ENDIAN}U2"), + ("A", "i1"), + ("B", f"{tm.ENDIAN}f4"), + ("C", "O"), + ], + ), + ), + # Invalid dype values. + ( + {"index": False, "column_dtypes": []}, + (ValueError, "Invalid dtype \\[\\] specified for column A"), + ), + ( + {"index": False, "column_dtypes": {"A": "int32", "B": 5}}, + (ValueError, "Invalid dtype 5 specified for column B"), + ), + # Numpy can't handle EA types, so check error is raised + ( + { + "index": False, + "column_dtypes": {"A": "int32", "B": CategoricalDtype(["a", "b"])}, + }, + (ValueError, "Invalid dtype category specified for column B"), + ), + # Check that bad types raise + ( + {"index": False, "column_dtypes": {"A": "int32", "B": "foo"}}, + (TypeError, "data type [\"']foo[\"'] not understood"), + ), + ], + ) + def test_to_records_dtype(self, kwargs, expected): + # see GH#18146 + df = DataFrame({"A": [1, 2], "B": [0.2, 1.5], "C": ["a", "bc"]}) + + if not isinstance(expected, np.rec.recarray): + with pytest.raises(expected[0], match=expected[1]): + df.to_records(**kwargs) + else: + result = df.to_records(**kwargs) + tm.assert_almost_equal(result, expected) + + @pytest.mark.parametrize( + "df,kwargs,expected", + [ + # MultiIndex in the index. + ( + DataFrame( + [[1, 2, 3], [4, 5, 6], [7, 8, 9]], columns=list("abc") + ).set_index(["a", "b"]), + {"column_dtypes": "float64", "index_dtypes": {0: "int32", 1: "int8"}}, + np.rec.array( + [(1, 2, 3.0), (4, 5, 6.0), (7, 8, 9.0)], + dtype=[ + ("a", f"{tm.ENDIAN}i4"), + ("b", "i1"), + ("c", f"{tm.ENDIAN}f8"), + ], + ), + ), + # MultiIndex in the columns. + ( + DataFrame( + [[1, 2, 3], [4, 5, 6], [7, 8, 9]], + columns=MultiIndex.from_tuples( + [("a", "d"), ("b", "e"), ("c", "f")] + ), + ), + { + "column_dtypes": {0: f"{tm.ENDIAN}U1", 2: "float32"}, + "index_dtypes": "float32", + }, + np.rec.array( + [(0.0, "1", 2, 3.0), (1.0, "4", 5, 6.0), (2.0, "7", 8, 9.0)], + dtype=[ + ("index", f"{tm.ENDIAN}f4"), + ("('a', 'd')", f"{tm.ENDIAN}U1"), + ("('b', 'e')", f"{tm.ENDIAN}i8"), + ("('c', 'f')", f"{tm.ENDIAN}f4"), + ], + ), + ), + # MultiIndex in both the columns and index. + ( + DataFrame( + [[1, 2, 3], [4, 5, 6], [7, 8, 9]], + columns=MultiIndex.from_tuples( + [("a", "d"), ("b", "e"), ("c", "f")], names=list("ab") + ), + index=MultiIndex.from_tuples( + [("d", -4), ("d", -5), ("f", -6)], names=list("cd") + ), + ), + { + "column_dtypes": "float64", + "index_dtypes": {0: f"{tm.ENDIAN}U2", 1: "int8"}, + }, + np.rec.array( + [ + ("d", -4, 1.0, 2.0, 3.0), + ("d", -5, 4.0, 5.0, 6.0), + ("f", -6, 7, 8, 9.0), + ], + dtype=[ + ("c", f"{tm.ENDIAN}U2"), + ("d", "i1"), + ("('a', 'd')", f"{tm.ENDIAN}f8"), + ("('b', 'e')", f"{tm.ENDIAN}f8"), + ("('c', 'f')", f"{tm.ENDIAN}f8"), + ], + ), + ), + ], + ) + def test_to_records_dtype_mi(self, df, kwargs, expected): + # see GH#18146 + result = df.to_records(**kwargs) + tm.assert_almost_equal(result, expected) + + def test_to_records_dict_like(self): + # see GH#18146 + class DictLike: + def __init__(self, **kwargs) -> None: + self.d = kwargs.copy() + + def __getitem__(self, key): + return self.d.__getitem__(key) + + def __contains__(self, key) -> bool: + return key in self.d + + def keys(self): + return self.d.keys() + + df = DataFrame({"A": [1, 2], "B": [0.2, 1.5], "C": ["a", "bc"]}) + + dtype_mappings = { + "column_dtypes": DictLike(A=np.int8, B=np.float32), + "index_dtypes": f"{tm.ENDIAN}U2", + } + + result = df.to_records(**dtype_mappings) + expected = np.rec.array( + [("0", "1", "0.2", "a"), ("1", "2", "1.5", "bc")], + dtype=[ + ("index", f"{tm.ENDIAN}U2"), + ("A", "i1"), + ("B", f"{tm.ENDIAN}f4"), + ("C", "O"), + ], + ) + tm.assert_almost_equal(result, expected) + + @pytest.mark.parametrize("tz", ["UTC", "GMT", "US/Eastern"]) + def test_to_records_datetimeindex_with_tz(self, tz): + # GH#13937 + dr = date_range("2016-01-01", periods=10, freq="s", tz=tz) + + df = DataFrame({"datetime": dr}, index=dr) + + expected = df.to_records() + result = df.tz_convert("UTC").to_records() + + # both converted to UTC, so they are equal + tm.assert_numpy_array_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_to_timestamp.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_to_timestamp.py new file mode 100644 index 0000000000000000000000000000000000000000..0e7e1d595d6be9250638932e7690f420b9a12fc0 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_to_timestamp.py @@ -0,0 +1,154 @@ +from datetime import timedelta + +import numpy as np +import pytest + +from pandas import ( + DataFrame, + DatetimeIndex, + PeriodIndex, + Series, + Timedelta, + date_range, + period_range, + to_datetime, +) +import pandas._testing as tm + + +def _get_with_delta(delta, freq="YE-DEC"): + return date_range( + to_datetime("1/1/2001") + delta, + to_datetime("12/31/2009") + delta, + freq=freq, + ) + + +class TestToTimestamp: + def test_to_timestamp(self, frame_or_series): + K = 5 + index = period_range(freq="Y", start="1/1/2001", end="12/1/2009") + obj = DataFrame( + np.random.default_rng(2).standard_normal((len(index), K)), + index=index, + columns=["A", "B", "C", "D", "E"], + ) + obj["mix"] = "a" + obj = tm.get_obj(obj, frame_or_series) + + exp_index = date_range("1/1/2001", end="12/31/2009", freq="YE-DEC") + exp_index = exp_index + Timedelta(1, "D") - Timedelta(1, "ns") + result = obj.to_timestamp("D", "end") + tm.assert_index_equal(result.index, exp_index) + tm.assert_numpy_array_equal(result.values, obj.values) + if frame_or_series is Series: + assert result.name == "A" + + exp_index = date_range("1/1/2001", end="1/1/2009", freq="YS-JAN") + result = obj.to_timestamp("D", "start") + tm.assert_index_equal(result.index, exp_index) + + result = obj.to_timestamp(how="start") + tm.assert_index_equal(result.index, exp_index) + + delta = timedelta(hours=23) + result = obj.to_timestamp("H", "end") + exp_index = _get_with_delta(delta) + exp_index = exp_index + Timedelta(1, "h") - Timedelta(1, "ns") + tm.assert_index_equal(result.index, exp_index) + + delta = timedelta(hours=23, minutes=59) + result = obj.to_timestamp("T", "end") + exp_index = _get_with_delta(delta) + exp_index = exp_index + Timedelta(1, "m") - Timedelta(1, "ns") + tm.assert_index_equal(result.index, exp_index) + + result = obj.to_timestamp("S", "end") + delta = timedelta(hours=23, minutes=59, seconds=59) + exp_index = _get_with_delta(delta) + exp_index = exp_index + Timedelta(1, "s") - Timedelta(1, "ns") + tm.assert_index_equal(result.index, exp_index) + + def test_to_timestamp_columns(self): + K = 5 + index = period_range(freq="Y", start="1/1/2001", end="12/1/2009") + df = DataFrame( + np.random.default_rng(2).standard_normal((len(index), K)), + index=index, + columns=["A", "B", "C", "D", "E"], + ) + df["mix"] = "a" + + # columns + df = df.T + + exp_index = date_range("1/1/2001", end="12/31/2009", freq="YE-DEC") + exp_index = exp_index + Timedelta(1, "D") - Timedelta(1, "ns") + result = df.to_timestamp("D", "end", axis=1) + tm.assert_index_equal(result.columns, exp_index) + tm.assert_numpy_array_equal(result.values, df.values) + + exp_index = date_range("1/1/2001", end="1/1/2009", freq="YS-JAN") + result = df.to_timestamp("D", "start", axis=1) + tm.assert_index_equal(result.columns, exp_index) + + delta = timedelta(hours=23) + result = df.to_timestamp("H", "end", axis=1) + exp_index = _get_with_delta(delta) + exp_index = exp_index + Timedelta(1, "h") - Timedelta(1, "ns") + tm.assert_index_equal(result.columns, exp_index) + + delta = timedelta(hours=23, minutes=59) + result = df.to_timestamp("min", "end", axis=1) + exp_index = _get_with_delta(delta) + exp_index = exp_index + Timedelta(1, "m") - Timedelta(1, "ns") + tm.assert_index_equal(result.columns, exp_index) + + result = df.to_timestamp("S", "end", axis=1) + delta = timedelta(hours=23, minutes=59, seconds=59) + exp_index = _get_with_delta(delta) + exp_index = exp_index + Timedelta(1, "s") - Timedelta(1, "ns") + tm.assert_index_equal(result.columns, exp_index) + + result1 = df.to_timestamp("5min", axis=1) + result2 = df.to_timestamp("min", axis=1) + expected = date_range("2001-01-01", "2009-01-01", freq="YS") + assert isinstance(result1.columns, DatetimeIndex) + assert isinstance(result2.columns, DatetimeIndex) + tm.assert_numpy_array_equal(result1.columns.asi8, expected.asi8) + tm.assert_numpy_array_equal(result2.columns.asi8, expected.asi8) + # PeriodIndex.to_timestamp always use 'infer' + assert result1.columns.freqstr == "YS-JAN" + assert result2.columns.freqstr == "YS-JAN" + + def test_to_timestamp_invalid_axis(self): + index = period_range(freq="Y", start="1/1/2001", end="12/1/2009") + obj = DataFrame( + np.random.default_rng(2).standard_normal((len(index), 5)), index=index + ) + + # invalid axis + with pytest.raises(ValueError, match="axis"): + obj.to_timestamp(axis=2) + + def test_to_timestamp_hourly(self, frame_or_series): + index = period_range(freq="h", start="1/1/2001", end="1/2/2001") + obj = Series(1, index=index, name="foo") + if frame_or_series is not Series: + obj = obj.to_frame() + + exp_index = date_range("1/1/2001 00:59:59", end="1/2/2001 00:59:59", freq="h") + result = obj.to_timestamp(how="end") + exp_index = exp_index + Timedelta(1, "s") - Timedelta(1, "ns") + tm.assert_index_equal(result.index, exp_index) + if frame_or_series is Series: + assert result.name == "foo" + + def test_to_timestamp_raises(self, index, frame_or_series): + # GH#33327 + obj = frame_or_series(index=index, dtype=object) + + if not isinstance(index, PeriodIndex): + msg = f"unsupported Type {type(index).__name__}" + with pytest.raises(TypeError, match=msg): + obj.to_timestamp() diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_transpose.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_transpose.py new file mode 100644 index 0000000000000000000000000000000000000000..3e74094f266d14b8752e562653cf490868dcd0b0 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_transpose.py @@ -0,0 +1,209 @@ +import numpy as np +import pytest + +import pandas.util._test_decorators as td + +import pandas as pd +from pandas import ( + DataFrame, + DatetimeIndex, + Index, + IntervalIndex, + Series, + Timestamp, + bdate_range, + date_range, + timedelta_range, +) +import pandas._testing as tm + + +class TestTranspose: + def test_transpose_td64_intervals(self): + # GH#44917 + tdi = timedelta_range("0 Days", "3 Days") + ii = IntervalIndex.from_breaks(tdi) + ii = ii.insert(-1, np.nan) + df = DataFrame(ii) + + result = df.T + expected = DataFrame({i: ii[i : i + 1] for i in range(len(ii))}) + tm.assert_frame_equal(result, expected) + + def test_transpose_empty_preserves_datetimeindex(self): + # GH#41382 + dti = DatetimeIndex([], dtype="M8[ns]") + df = DataFrame(index=dti) + + expected = DatetimeIndex([], dtype="datetime64[ns]", freq=None) + + result1 = df.T.sum().index + result2 = df.sum(axis=1).index + + tm.assert_index_equal(result1, expected) + tm.assert_index_equal(result2, expected) + + def test_transpose_tzaware_1col_single_tz(self): + # GH#26825 + dti = date_range("2016-04-05 04:30", periods=3, tz="UTC") + + df = DataFrame(dti) + assert (df.dtypes == dti.dtype).all() + res = df.T + assert (res.dtypes == dti.dtype).all() + + def test_transpose_tzaware_2col_single_tz(self): + # GH#26825 + dti = date_range("2016-04-05 04:30", periods=3, tz="UTC") + + df3 = DataFrame({"A": dti, "B": dti}) + assert (df3.dtypes == dti.dtype).all() + res3 = df3.T + assert (res3.dtypes == dti.dtype).all() + + def test_transpose_tzaware_2col_mixed_tz(self): + # GH#26825 + dti = date_range("2016-04-05 04:30", periods=3, tz="UTC") + dti2 = dti.tz_convert("US/Pacific") + + df4 = DataFrame({"A": dti, "B": dti2}) + assert (df4.dtypes == [dti.dtype, dti2.dtype]).all() + assert (df4.T.dtypes == object).all() + tm.assert_frame_equal(df4.T.T, df4.astype(object)) + + @pytest.mark.parametrize("tz", [None, "America/New_York"]) + def test_transpose_preserves_dtindex_equality_with_dst(self, tz): + # GH#19970 + idx = date_range("20161101", "20161130", freq="4h", tz=tz) + df = DataFrame({"a": range(len(idx)), "b": range(len(idx))}, index=idx) + result = df.T == df.T + expected = DataFrame(True, index=list("ab"), columns=idx) + tm.assert_frame_equal(result, expected) + + def test_transpose_object_to_tzaware_mixed_tz(self): + # GH#26825 + dti = date_range("2016-04-05 04:30", periods=3, tz="UTC") + dti2 = dti.tz_convert("US/Pacific") + + # mixed all-tzaware dtypes + df2 = DataFrame([dti, dti2]) + assert (df2.dtypes == object).all() + res2 = df2.T + assert (res2.dtypes == object).all() + + def test_transpose_uint64(self): + df = DataFrame( + {"A": np.arange(3), "B": [2**63, 2**63 + 5, 2**63 + 10]}, + dtype=np.uint64, + ) + result = df.T + expected = DataFrame(df.values.T) + expected.index = ["A", "B"] + tm.assert_frame_equal(result, expected) + + def test_transpose_float(self, float_frame): + frame = float_frame + dft = frame.T + for idx, series in dft.items(): + for col, value in series.items(): + if np.isnan(value): + assert np.isnan(frame[col][idx]) + else: + assert value == frame[col][idx] + + def test_transpose_mixed(self): + # mixed type + mixed = DataFrame( + { + "A": [0.0, 1.0, 2.0, 3.0, 4.0], + "B": [0.0, 1.0, 0.0, 1.0, 0.0], + "C": ["foo1", "foo2", "foo3", "foo4", "foo5"], + "D": bdate_range("1/1/2009", periods=5), + }, + index=Index(["a", "b", "c", "d", "e"], dtype=object), + ) + + mixed_T = mixed.T + for col, s in mixed_T.items(): + assert s.dtype == np.object_ + + @td.skip_array_manager_invalid_test + def test_transpose_get_view(self, float_frame, using_copy_on_write): + dft = float_frame.T + dft.iloc[:, 5:10] = 5 + + if using_copy_on_write: + assert (float_frame.values[5:10] != 5).all() + else: + assert (float_frame.values[5:10] == 5).all() + + @td.skip_array_manager_invalid_test + def test_transpose_get_view_dt64tzget_view(self, using_copy_on_write): + dti = date_range("2016-01-01", periods=6, tz="US/Pacific") + arr = dti._data.reshape(3, 2) + df = DataFrame(arr) + assert df._mgr.nblocks == 1 + + result = df.T + assert result._mgr.nblocks == 1 + + rtrip = result._mgr.blocks[0].values + if using_copy_on_write: + assert np.shares_memory(df._mgr.blocks[0].values._ndarray, rtrip._ndarray) + else: + assert np.shares_memory(arr._ndarray, rtrip._ndarray) + + def test_transpose_not_inferring_dt(self): + # GH#51546 + df = DataFrame( + { + "a": [Timestamp("2019-12-31"), Timestamp("2019-12-31")], + }, + dtype=object, + ) + result = df.T + expected = DataFrame( + [[Timestamp("2019-12-31"), Timestamp("2019-12-31")]], + columns=[0, 1], + index=["a"], + dtype=object, + ) + tm.assert_frame_equal(result, expected) + + def test_transpose_not_inferring_dt_mixed_blocks(self): + # GH#51546 + df = DataFrame( + { + "a": Series( + [Timestamp("2019-12-31"), Timestamp("2019-12-31")], dtype=object + ), + "b": [Timestamp("2019-12-31"), Timestamp("2019-12-31")], + } + ) + result = df.T + expected = DataFrame( + [ + [Timestamp("2019-12-31"), Timestamp("2019-12-31")], + [Timestamp("2019-12-31"), Timestamp("2019-12-31")], + ], + columns=[0, 1], + index=["a", "b"], + dtype=object, + ) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("dtype1", ["Int64", "Float64"]) + @pytest.mark.parametrize("dtype2", ["Int64", "Float64"]) + def test_transpose(self, dtype1, dtype2): + # GH#57315 - transpose should have F contiguous blocks + df = DataFrame( + { + "a": pd.array([1, 1, 2], dtype=dtype1), + "b": pd.array([3, 4, 5], dtype=dtype2), + } + ) + result = df.T + for blk in result._mgr.blocks: + # When dtypes are unequal, we get NumPy object array + data = blk.values._data if dtype1 == dtype2 else blk.values + assert data.flags["F_CONTIGUOUS"] diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_truncate.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_truncate.py new file mode 100644 index 0000000000000000000000000000000000000000..12077952c2e0300257eb9029d2a1a231d5fa0a5c --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_truncate.py @@ -0,0 +1,154 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + DataFrame, + DatetimeIndex, + Index, + Series, + date_range, +) +import pandas._testing as tm + + +class TestDataFrameTruncate: + def test_truncate(self, datetime_frame, frame_or_series): + ts = datetime_frame[::3] + ts = tm.get_obj(ts, frame_or_series) + + start, end = datetime_frame.index[3], datetime_frame.index[6] + + start_missing = datetime_frame.index[2] + end_missing = datetime_frame.index[7] + + # neither specified + truncated = ts.truncate() + tm.assert_equal(truncated, ts) + + # both specified + expected = ts[1:3] + + truncated = ts.truncate(start, end) + tm.assert_equal(truncated, expected) + + truncated = ts.truncate(start_missing, end_missing) + tm.assert_equal(truncated, expected) + + # start specified + expected = ts[1:] + + truncated = ts.truncate(before=start) + tm.assert_equal(truncated, expected) + + truncated = ts.truncate(before=start_missing) + tm.assert_equal(truncated, expected) + + # end specified + expected = ts[:3] + + truncated = ts.truncate(after=end) + tm.assert_equal(truncated, expected) + + truncated = ts.truncate(after=end_missing) + tm.assert_equal(truncated, expected) + + # corner case, empty series/frame returned + truncated = ts.truncate(after=ts.index[0] - ts.index.freq) + assert len(truncated) == 0 + + truncated = ts.truncate(before=ts.index[-1] + ts.index.freq) + assert len(truncated) == 0 + + msg = "Truncate: 2000-01-06 00:00:00 must be after 2000-05-16 00:00:00" + with pytest.raises(ValueError, match=msg): + ts.truncate( + before=ts.index[-1] - ts.index.freq, after=ts.index[0] + ts.index.freq + ) + + def test_truncate_nonsortedindex(self, frame_or_series): + # GH#17935 + + obj = DataFrame({"A": ["a", "b", "c", "d", "e"]}, index=[5, 3, 2, 9, 0]) + obj = tm.get_obj(obj, frame_or_series) + + msg = "truncate requires a sorted index" + with pytest.raises(ValueError, match=msg): + obj.truncate(before=3, after=9) + + def test_sort_values_nonsortedindex(self): + rng = date_range("2011-01-01", "2012-01-01", freq="W") + ts = DataFrame( + { + "A": np.random.default_rng(2).standard_normal(len(rng)), + "B": np.random.default_rng(2).standard_normal(len(rng)), + }, + index=rng, + ) + + decreasing = ts.sort_values("A", ascending=False) + + msg = "truncate requires a sorted index" + with pytest.raises(ValueError, match=msg): + decreasing.truncate(before="2011-11", after="2011-12") + + def test_truncate_nonsortedindex_axis1(self): + # GH#17935 + + df = DataFrame( + { + 3: np.random.default_rng(2).standard_normal(5), + 20: np.random.default_rng(2).standard_normal(5), + 2: np.random.default_rng(2).standard_normal(5), + 0: np.random.default_rng(2).standard_normal(5), + }, + columns=[3, 20, 2, 0], + ) + msg = "truncate requires a sorted index" + with pytest.raises(ValueError, match=msg): + df.truncate(before=2, after=20, axis=1) + + @pytest.mark.parametrize( + "before, after, indices", + [(1, 2, [2, 1]), (None, 2, [2, 1, 0]), (1, None, [3, 2, 1])], + ) + @pytest.mark.parametrize("dtyp", [*tm.ALL_REAL_NUMPY_DTYPES, "datetime64[ns]"]) + def test_truncate_decreasing_index( + self, before, after, indices, dtyp, frame_or_series + ): + # https://github.com/pandas-dev/pandas/issues/33756 + idx = Index([3, 2, 1, 0], dtype=dtyp) + if isinstance(idx, DatetimeIndex): + before = pd.Timestamp(before) if before is not None else None + after = pd.Timestamp(after) if after is not None else None + indices = [pd.Timestamp(i) for i in indices] + values = frame_or_series(range(len(idx)), index=idx) + result = values.truncate(before=before, after=after) + expected = values.loc[indices] + tm.assert_equal(result, expected) + + def test_truncate_multiindex(self, frame_or_series): + # GH 34564 + mi = pd.MultiIndex.from_product([[1, 2, 3, 4], ["A", "B"]], names=["L1", "L2"]) + s1 = DataFrame(range(mi.shape[0]), index=mi, columns=["col"]) + s1 = tm.get_obj(s1, frame_or_series) + + result = s1.truncate(before=2, after=3) + + df = DataFrame.from_dict( + {"L1": [2, 2, 3, 3], "L2": ["A", "B", "A", "B"], "col": [2, 3, 4, 5]} + ) + expected = df.set_index(["L1", "L2"]) + expected = tm.get_obj(expected, frame_or_series) + + tm.assert_equal(result, expected) + + def test_truncate_index_only_one_unique_value(self, frame_or_series): + # GH 42365 + obj = Series(0, index=date_range("2021-06-30", "2021-06-30")).repeat(5) + if frame_or_series is DataFrame: + obj = obj.to_frame(name="a") + + truncated = obj.truncate("2021-06-28", "2021-07-01") + + tm.assert_equal(truncated, obj) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_tz_convert.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_tz_convert.py new file mode 100644 index 0000000000000000000000000000000000000000..bcb8e423980fdc06195846a6d79afa00f8e691fd --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_tz_convert.py @@ -0,0 +1,131 @@ +import numpy as np +import pytest + +from pandas import ( + DataFrame, + Index, + MultiIndex, + Series, + date_range, +) +import pandas._testing as tm + + +class TestTZConvert: + def test_tz_convert(self, frame_or_series): + rng = date_range("1/1/2011", periods=200, freq="D", tz="US/Eastern") + + obj = DataFrame({"a": 1}, index=rng) + obj = tm.get_obj(obj, frame_or_series) + + result = obj.tz_convert("Europe/Berlin") + expected = DataFrame({"a": 1}, rng.tz_convert("Europe/Berlin")) + expected = tm.get_obj(expected, frame_or_series) + + assert result.index.tz.zone == "Europe/Berlin" + tm.assert_equal(result, expected) + + def test_tz_convert_axis1(self): + rng = date_range("1/1/2011", periods=200, freq="D", tz="US/Eastern") + + obj = DataFrame({"a": 1}, index=rng) + + obj = obj.T + result = obj.tz_convert("Europe/Berlin", axis=1) + assert result.columns.tz.zone == "Europe/Berlin" + + expected = DataFrame({"a": 1}, rng.tz_convert("Europe/Berlin")) + + tm.assert_equal(result, expected.T) + + def test_tz_convert_naive(self, frame_or_series): + # can't convert tz-naive + rng = date_range("1/1/2011", periods=200, freq="D") + ts = Series(1, index=rng) + ts = frame_or_series(ts) + + with pytest.raises(TypeError, match="Cannot convert tz-naive"): + ts.tz_convert("US/Eastern") + + @pytest.mark.parametrize("fn", ["tz_localize", "tz_convert"]) + def test_tz_convert_and_localize(self, fn): + l0 = date_range("20140701", periods=5, freq="D") + l1 = date_range("20140701", periods=5, freq="D") + + int_idx = Index(range(5)) + + if fn == "tz_convert": + l0 = l0.tz_localize("UTC") + l1 = l1.tz_localize("UTC") + + for idx in [l0, l1]: + l0_expected = getattr(idx, fn)("US/Pacific") + l1_expected = getattr(idx, fn)("US/Pacific") + + df1 = DataFrame(np.ones(5), index=l0) + df1 = getattr(df1, fn)("US/Pacific") + tm.assert_index_equal(df1.index, l0_expected) + + # MultiIndex + # GH7846 + df2 = DataFrame(np.ones(5), MultiIndex.from_arrays([l0, l1])) + + # freq is not preserved in MultiIndex construction + l1_expected = l1_expected._with_freq(None) + l0_expected = l0_expected._with_freq(None) + l1 = l1._with_freq(None) + l0 = l0._with_freq(None) + + df3 = getattr(df2, fn)("US/Pacific", level=0) + assert not df3.index.levels[0].equals(l0) + tm.assert_index_equal(df3.index.levels[0], l0_expected) + tm.assert_index_equal(df3.index.levels[1], l1) + assert not df3.index.levels[1].equals(l1_expected) + + df3 = getattr(df2, fn)("US/Pacific", level=1) + tm.assert_index_equal(df3.index.levels[0], l0) + assert not df3.index.levels[0].equals(l0_expected) + tm.assert_index_equal(df3.index.levels[1], l1_expected) + assert not df3.index.levels[1].equals(l1) + + df4 = DataFrame(np.ones(5), MultiIndex.from_arrays([int_idx, l0])) + + # TODO: untested + getattr(df4, fn)("US/Pacific", level=1) + + tm.assert_index_equal(df3.index.levels[0], l0) + assert not df3.index.levels[0].equals(l0_expected) + tm.assert_index_equal(df3.index.levels[1], l1_expected) + assert not df3.index.levels[1].equals(l1) + + # Bad Inputs + + # Not DatetimeIndex / PeriodIndex + with pytest.raises(TypeError, match="DatetimeIndex"): + df = DataFrame(index=int_idx) + getattr(df, fn)("US/Pacific") + + # Not DatetimeIndex / PeriodIndex + with pytest.raises(TypeError, match="DatetimeIndex"): + df = DataFrame(np.ones(5), MultiIndex.from_arrays([int_idx, l0])) + getattr(df, fn)("US/Pacific", level=0) + + # Invalid level + with pytest.raises(ValueError, match="not valid"): + df = DataFrame(index=l0) + getattr(df, fn)("US/Pacific", level=1) + + @pytest.mark.parametrize("copy", [True, False]) + def test_tz_convert_copy_inplace_mutate(self, copy, frame_or_series): + # GH#6326 + obj = frame_or_series( + np.arange(0, 5), + index=date_range("20131027", periods=5, freq="h", tz="Europe/Berlin"), + ) + orig = obj.copy() + result = obj.tz_convert("UTC", copy=copy) + expected = frame_or_series(np.arange(0, 5), index=obj.index.tz_convert("UTC")) + tm.assert_equal(result, expected) + tm.assert_equal(obj, orig) + assert result.index is not obj.index + assert result is not obj diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_tz_localize.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_tz_localize.py new file mode 100644 index 0000000000000000000000000000000000000000..b167afc17f484cce36c3909222b3f3d80ff4c926 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_tz_localize.py @@ -0,0 +1,68 @@ +from datetime import timezone + +import numpy as np +import pytest + +from pandas import ( + DataFrame, + Series, + date_range, +) +import pandas._testing as tm + + +class TestTZLocalize: + # See also: + # test_tz_convert_and_localize in test_tz_convert + + def test_tz_localize(self, frame_or_series): + rng = date_range("1/1/2011", periods=100, freq="h") + + obj = DataFrame({"a": 1}, index=rng) + obj = tm.get_obj(obj, frame_or_series) + + result = obj.tz_localize("utc") + expected = DataFrame({"a": 1}, rng.tz_localize("UTC")) + expected = tm.get_obj(expected, frame_or_series) + + assert result.index.tz is timezone.utc + tm.assert_equal(result, expected) + + def test_tz_localize_axis1(self): + rng = date_range("1/1/2011", periods=100, freq="h") + + df = DataFrame({"a": 1}, index=rng) + + df = df.T + result = df.tz_localize("utc", axis=1) + assert result.columns.tz is timezone.utc + + expected = DataFrame({"a": 1}, rng.tz_localize("UTC")) + + tm.assert_frame_equal(result, expected.T) + + def test_tz_localize_naive(self, frame_or_series): + # Can't localize if already tz-aware + rng = date_range("1/1/2011", periods=100, freq="h", tz="utc") + ts = Series(1, index=rng) + ts = frame_or_series(ts) + + with pytest.raises(TypeError, match="Already tz-aware"): + ts.tz_localize("US/Eastern") + + @pytest.mark.parametrize("copy", [True, False]) + def test_tz_localize_copy_inplace_mutate(self, copy, frame_or_series): + # GH#6326 + obj = frame_or_series( + np.arange(0, 5), index=date_range("20131027", periods=5, freq="1h", tz=None) + ) + orig = obj.copy() + result = obj.tz_localize("UTC", copy=copy) + expected = frame_or_series( + np.arange(0, 5), + index=date_range("20131027", periods=5, freq="1h", tz="UTC"), + ) + tm.assert_equal(result, expected) + tm.assert_equal(obj, orig) + assert result.index is not obj.index + assert result is not obj diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_update.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_update.py new file mode 100644 index 0000000000000000000000000000000000000000..56700ab6bd1f7327ba7622f6d2cb7418c96146ab --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_update.py @@ -0,0 +1,204 @@ +import numpy as np +import pytest + +import pandas.util._test_decorators as td + +import pandas as pd +from pandas import ( + DataFrame, + Series, + date_range, +) +import pandas._testing as tm + + +class TestDataFrameUpdate: + def test_update_nan(self): + # #15593 #15617 + # test 1 + df1 = DataFrame({"A": [1.0, 2, 3], "B": date_range("2000", periods=3)}) + df2 = DataFrame({"A": [None, 2, 3]}) + expected = df1.copy() + df1.update(df2, overwrite=False) + + tm.assert_frame_equal(df1, expected) + + # test 2 + df1 = DataFrame({"A": [1.0, None, 3], "B": date_range("2000", periods=3)}) + df2 = DataFrame({"A": [None, 2, 3]}) + expected = DataFrame({"A": [1.0, 2, 3], "B": date_range("2000", periods=3)}) + df1.update(df2, overwrite=False) + + tm.assert_frame_equal(df1, expected) + + def test_update(self): + df = DataFrame( + [[1.5, np.nan, 3.0], [1.5, np.nan, 3.0], [1.5, np.nan, 3], [1.5, np.nan, 3]] + ) + + other = DataFrame([[3.6, 2.0, np.nan], [np.nan, np.nan, 7]], index=[1, 3]) + + df.update(other) + + expected = DataFrame( + [[1.5, np.nan, 3], [3.6, 2, 3], [1.5, np.nan, 3], [1.5, np.nan, 7.0]] + ) + tm.assert_frame_equal(df, expected) + + def test_update_dtypes(self): + # gh 3016 + df = DataFrame( + [[1.0, 2.0, 1, False, True], [4.0, 5.0, 2, True, False]], + columns=["A", "B", "int", "bool1", "bool2"], + ) + + other = DataFrame( + [[45, 45, 3, True]], index=[0], columns=["A", "B", "int", "bool1"] + ) + df.update(other) + + expected = DataFrame( + [[45.0, 45.0, 3, True, True], [4.0, 5.0, 2, True, False]], + columns=["A", "B", "int", "bool1", "bool2"], + ) + tm.assert_frame_equal(df, expected) + + def test_update_nooverwrite(self): + df = DataFrame( + [[1.5, np.nan, 3.0], [1.5, np.nan, 3.0], [1.5, np.nan, 3], [1.5, np.nan, 3]] + ) + + other = DataFrame([[3.6, 2.0, np.nan], [np.nan, np.nan, 7]], index=[1, 3]) + + df.update(other, overwrite=False) + + expected = DataFrame( + [[1.5, np.nan, 3], [1.5, 2, 3], [1.5, np.nan, 3], [1.5, np.nan, 3.0]] + ) + tm.assert_frame_equal(df, expected) + + def test_update_filtered(self): + df = DataFrame( + [[1.5, np.nan, 3.0], [1.5, np.nan, 3.0], [1.5, np.nan, 3], [1.5, np.nan, 3]] + ) + + other = DataFrame([[3.6, 2.0, np.nan], [np.nan, np.nan, 7]], index=[1, 3]) + + df.update(other, filter_func=lambda x: x > 2) + + expected = DataFrame( + [[1.5, np.nan, 3], [1.5, np.nan, 3], [1.5, np.nan, 3], [1.5, np.nan, 7.0]] + ) + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize( + "bad_kwarg, exception, msg", + [ + # errors must be 'ignore' or 'raise' + ({"errors": "something"}, ValueError, "The parameter errors must.*"), + ({"join": "inner"}, NotImplementedError, "Only left join is supported"), + ], + ) + def test_update_raise_bad_parameter(self, bad_kwarg, exception, msg): + df = DataFrame([[1.5, 1, 3.0]]) + with pytest.raises(exception, match=msg): + df.update(df, **bad_kwarg) + + def test_update_raise_on_overlap(self): + df = DataFrame( + [[1.5, 1, 3.0], [1.5, np.nan, 3.0], [1.5, np.nan, 3], [1.5, np.nan, 3]] + ) + + other = DataFrame([[2.0, np.nan], [np.nan, 7]], index=[1, 3], columns=[1, 2]) + with pytest.raises(ValueError, match="Data overlaps"): + df.update(other, errors="raise") + + def test_update_from_non_df(self): + d = {"a": Series([1, 2, 3, 4]), "b": Series([5, 6, 7, 8])} + df = DataFrame(d) + + d["a"] = Series([5, 6, 7, 8]) + df.update(d) + + expected = DataFrame(d) + + tm.assert_frame_equal(df, expected) + + d = {"a": [1, 2, 3, 4], "b": [5, 6, 7, 8]} + df = DataFrame(d) + + d["a"] = [5, 6, 7, 8] + df.update(d) + + expected = DataFrame(d) + + tm.assert_frame_equal(df, expected) + + def test_update_datetime_tz(self): + # GH 25807 + result = DataFrame([pd.Timestamp("2019", tz="UTC")]) + with tm.assert_produces_warning(None): + result.update(result) + expected = DataFrame([pd.Timestamp("2019", tz="UTC")]) + tm.assert_frame_equal(result, expected) + + def test_update_datetime_tz_in_place(self, using_copy_on_write, warn_copy_on_write): + # https://github.com/pandas-dev/pandas/issues/56227 + result = DataFrame([pd.Timestamp("2019", tz="UTC")]) + orig = result.copy() + view = result[:] + with tm.assert_produces_warning( + FutureWarning if warn_copy_on_write else None, match="Setting a value" + ): + result.update(result + pd.Timedelta(days=1)) + expected = DataFrame([pd.Timestamp("2019-01-02", tz="UTC")]) + tm.assert_frame_equal(result, expected) + if not using_copy_on_write: + tm.assert_frame_equal(view, expected) + else: + tm.assert_frame_equal(view, orig) + + def test_update_with_different_dtype(self, using_copy_on_write): + # GH#3217 + df = DataFrame({"a": [1, 3], "b": [np.nan, 2]}) + df["c"] = np.nan + with tm.assert_produces_warning(FutureWarning, match="incompatible dtype"): + df.update({"c": Series(["foo"], index=[0])}) + + expected = DataFrame( + { + "a": [1, 3], + "b": [np.nan, 2], + "c": Series(["foo", np.nan]), + } + ) + tm.assert_frame_equal(df, expected) + + @td.skip_array_manager_invalid_test + def test_update_modify_view( + self, using_copy_on_write, warn_copy_on_write, using_infer_string + ): + # GH#47188 + df = DataFrame({"A": ["1", np.nan], "B": ["100", np.nan]}) + df2 = DataFrame({"A": ["a", "x"], "B": ["100", "200"]}) + df2_orig = df2.copy() + result_view = df2[:] + # TODO(CoW-warn) better warning message + with tm.assert_cow_warning(warn_copy_on_write): + df2.update(df) + expected = DataFrame({"A": ["1", "x"], "B": ["100", "200"]}) + tm.assert_frame_equal(df2, expected) + if using_copy_on_write or using_infer_string: + tm.assert_frame_equal(result_view, df2_orig) + else: + tm.assert_frame_equal(result_view, expected) + + def test_update_dt_column_with_NaT_create_column(self): + # GH#16713 + df = DataFrame({"A": [1, None], "B": [pd.NaT, pd.to_datetime("2016-01-01")]}) + df2 = DataFrame({"A": [2, 3]}) + df.update(df2, overwrite=False) + expected = DataFrame( + {"A": [1.0, 3.0], "B": [pd.NaT, pd.to_datetime("2016-01-01")]} + ) + tm.assert_frame_equal(df, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_value_counts.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_value_counts.py new file mode 100644 index 0000000000000000000000000000000000000000..4136d641ef67f2d289142b34db7a2616de24ad24 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_value_counts.py @@ -0,0 +1,205 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm + + +def test_data_frame_value_counts_unsorted(): + df = pd.DataFrame( + {"num_legs": [2, 4, 4, 6], "num_wings": [2, 0, 0, 0]}, + index=["falcon", "dog", "cat", "ant"], + ) + + result = df.value_counts(sort=False) + expected = pd.Series( + data=[1, 2, 1], + index=pd.MultiIndex.from_arrays( + [(2, 4, 6), (2, 0, 0)], names=["num_legs", "num_wings"] + ), + name="count", + ) + + tm.assert_series_equal(result, expected) + + +def test_data_frame_value_counts_ascending(): + df = pd.DataFrame( + {"num_legs": [2, 4, 4, 6], "num_wings": [2, 0, 0, 0]}, + index=["falcon", "dog", "cat", "ant"], + ) + + result = df.value_counts(ascending=True) + expected = pd.Series( + data=[1, 1, 2], + index=pd.MultiIndex.from_arrays( + [(2, 6, 4), (2, 0, 0)], names=["num_legs", "num_wings"] + ), + name="count", + ) + + tm.assert_series_equal(result, expected) + + +def test_data_frame_value_counts_default(): + df = pd.DataFrame( + {"num_legs": [2, 4, 4, 6], "num_wings": [2, 0, 0, 0]}, + index=["falcon", "dog", "cat", "ant"], + ) + + result = df.value_counts() + expected = pd.Series( + data=[2, 1, 1], + index=pd.MultiIndex.from_arrays( + [(4, 2, 6), (0, 2, 0)], names=["num_legs", "num_wings"] + ), + name="count", + ) + + tm.assert_series_equal(result, expected) + + +def test_data_frame_value_counts_normalize(): + df = pd.DataFrame( + {"num_legs": [2, 4, 4, 6], "num_wings": [2, 0, 0, 0]}, + index=["falcon", "dog", "cat", "ant"], + ) + + result = df.value_counts(normalize=True) + expected = pd.Series( + data=[0.5, 0.25, 0.25], + index=pd.MultiIndex.from_arrays( + [(4, 2, 6), (0, 2, 0)], names=["num_legs", "num_wings"] + ), + name="proportion", + ) + + tm.assert_series_equal(result, expected) + + +def test_data_frame_value_counts_single_col_default(): + df = pd.DataFrame({"num_legs": [2, 4, 4, 6]}) + + result = df.value_counts() + expected = pd.Series( + data=[2, 1, 1], + index=pd.MultiIndex.from_arrays([[4, 2, 6]], names=["num_legs"]), + name="count", + ) + + tm.assert_series_equal(result, expected) + + +def test_data_frame_value_counts_empty(): + df_no_cols = pd.DataFrame() + + result = df_no_cols.value_counts() + expected = pd.Series( + [], dtype=np.int64, name="count", index=np.array([], dtype=np.intp) + ) + + tm.assert_series_equal(result, expected) + + +def test_data_frame_value_counts_empty_normalize(): + df_no_cols = pd.DataFrame() + + result = df_no_cols.value_counts(normalize=True) + expected = pd.Series( + [], dtype=np.float64, name="proportion", index=np.array([], dtype=np.intp) + ) + + tm.assert_series_equal(result, expected) + + +def test_data_frame_value_counts_dropna_true(nulls_fixture): + # GH 41334 + df = pd.DataFrame( + { + "first_name": ["John", "Anne", "John", "Beth"], + "middle_name": ["Smith", nulls_fixture, nulls_fixture, "Louise"], + }, + ) + result = df.value_counts() + expected = pd.Series( + data=[1, 1], + index=pd.MultiIndex.from_arrays( + [("Beth", "John"), ("Louise", "Smith")], names=["first_name", "middle_name"] + ), + name="count", + ) + + tm.assert_series_equal(result, expected) + + +def test_data_frame_value_counts_dropna_false(nulls_fixture): + # GH 41334 + df = pd.DataFrame( + { + "first_name": ["John", "Anne", "John", "Beth"], + "middle_name": ["Smith", nulls_fixture, nulls_fixture, "Louise"], + }, + ) + + result = df.value_counts(dropna=False) + expected = pd.Series( + data=[1, 1, 1, 1], + index=pd.MultiIndex( + levels=[ + pd.Index(["Anne", "Beth", "John"]), + pd.Index(["Louise", "Smith", np.nan]), + ], + codes=[[0, 1, 2, 2], [2, 0, 1, 2]], + names=["first_name", "middle_name"], + ), + name="count", + ) + + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("columns", (["first_name", "middle_name"], [0, 1])) +def test_data_frame_value_counts_subset(nulls_fixture, columns): + # GH 50829 + df = pd.DataFrame( + { + columns[0]: ["John", "Anne", "John", "Beth"], + columns[1]: ["Smith", nulls_fixture, nulls_fixture, "Louise"], + }, + ) + result = df.value_counts(columns[0]) + expected = pd.Series( + data=[2, 1, 1], + index=pd.Index(["John", "Anne", "Beth"], name=columns[0]), + name="count", + ) + + tm.assert_series_equal(result, expected) + + +def test_value_counts_categorical_future_warning(): + # GH#54775 + df = pd.DataFrame({"a": [1, 2, 3]}, dtype="category") + result = df.value_counts() + expected = pd.Series( + 1, + index=pd.MultiIndex.from_arrays( + [pd.Index([1, 2, 3], name="a", dtype="category")] + ), + name="count", + ) + tm.assert_series_equal(result, expected) + + +def test_value_counts_with_missing_category(): + # GH-54836 + df = pd.DataFrame({"a": pd.Categorical([1, 2, 4], categories=[1, 2, 3, 4])}) + result = df.value_counts() + expected = pd.Series( + [1, 1, 1, 0], + index=pd.MultiIndex.from_arrays( + [pd.CategoricalIndex([1, 2, 4, 3], categories=[1, 2, 3, 4], name="a")] + ), + name="count", + ) + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_values.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_values.py new file mode 100644 index 0000000000000000000000000000000000000000..bbca4ee1b88b1b756ea27140d2944d349049c37c --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/methods/test_values.py @@ -0,0 +1,280 @@ +import numpy as np +import pytest + +import pandas.util._test_decorators as td + +from pandas import ( + DataFrame, + NaT, + Series, + Timestamp, + date_range, + period_range, +) +import pandas._testing as tm + + +class TestDataFrameValues: + @td.skip_array_manager_invalid_test + def test_values(self, float_frame, using_copy_on_write): + if using_copy_on_write: + with pytest.raises(ValueError, match="read-only"): + float_frame.values[:, 0] = 5.0 + assert (float_frame.values[:, 0] != 5).all() + else: + float_frame.values[:, 0] = 5.0 + assert (float_frame.values[:, 0] == 5).all() + + def test_more_values(self, float_string_frame): + values = float_string_frame.values + assert values.shape[1] == len(float_string_frame.columns) + + def test_values_mixed_dtypes(self, float_frame, float_string_frame): + frame = float_frame + arr = frame.values + + frame_cols = frame.columns + for i, row in enumerate(arr): + for j, value in enumerate(row): + col = frame_cols[j] + if np.isnan(value): + assert np.isnan(frame[col].iloc[i]) + else: + assert value == frame[col].iloc[i] + + # mixed type + arr = float_string_frame[["foo", "A"]].values + assert arr[0, 0] == "bar" + + df = DataFrame({"complex": [1j, 2j, 3j], "real": [1, 2, 3]}) + arr = df.values + assert arr[0, 0] == 1j + + def test_values_duplicates(self): + df = DataFrame( + [[1, 2, "a", "b"], [1, 2, "a", "b"]], columns=["one", "one", "two", "two"] + ) + + result = df.values + expected = np.array([[1, 2, "a", "b"], [1, 2, "a", "b"]], dtype=object) + + tm.assert_numpy_array_equal(result, expected) + + def test_values_with_duplicate_columns(self): + df = DataFrame([[1, 2.5], [3, 4.5]], index=[1, 2], columns=["x", "x"]) + result = df.values + expected = np.array([[1, 2.5], [3, 4.5]]) + assert (result == expected).all().all() + + @pytest.mark.parametrize("constructor", [date_range, period_range]) + def test_values_casts_datetimelike_to_object(self, constructor): + series = Series(constructor("2000-01-01", periods=10, freq="D")) + + expected = series.astype("object") + + df = DataFrame( + {"a": series, "b": np.random.default_rng(2).standard_normal(len(series))} + ) + + result = df.values.squeeze() + assert (result[:, 0] == expected.values).all() + + df = DataFrame({"a": series, "b": ["foo"] * len(series)}) + + result = df.values.squeeze() + assert (result[:, 0] == expected.values).all() + + def test_frame_values_with_tz(self): + tz = "US/Central" + df = DataFrame({"A": date_range("2000", periods=4, tz=tz)}) + result = df.values + expected = np.array( + [ + [Timestamp("2000-01-01", tz=tz)], + [Timestamp("2000-01-02", tz=tz)], + [Timestamp("2000-01-03", tz=tz)], + [Timestamp("2000-01-04", tz=tz)], + ] + ) + tm.assert_numpy_array_equal(result, expected) + + # two columns, homogeneous + + df["B"] = df["A"] + result = df.values + expected = np.concatenate([expected, expected], axis=1) + tm.assert_numpy_array_equal(result, expected) + + # three columns, heterogeneous + est = "US/Eastern" + df["C"] = df["A"].dt.tz_convert(est) + + new = np.array( + [ + [Timestamp("2000-01-01T01:00:00", tz=est)], + [Timestamp("2000-01-02T01:00:00", tz=est)], + [Timestamp("2000-01-03T01:00:00", tz=est)], + [Timestamp("2000-01-04T01:00:00", tz=est)], + ] + ) + expected = np.concatenate([expected, new], axis=1) + result = df.values + tm.assert_numpy_array_equal(result, expected) + + def test_interleave_with_tzaware(self, timezone_frame): + # interleave with object + result = timezone_frame.assign(D="foo").values + expected = np.array( + [ + [ + Timestamp("2013-01-01 00:00:00"), + Timestamp("2013-01-02 00:00:00"), + Timestamp("2013-01-03 00:00:00"), + ], + [ + Timestamp("2013-01-01 00:00:00-0500", tz="US/Eastern"), + NaT, + Timestamp("2013-01-03 00:00:00-0500", tz="US/Eastern"), + ], + [ + Timestamp("2013-01-01 00:00:00+0100", tz="CET"), + NaT, + Timestamp("2013-01-03 00:00:00+0100", tz="CET"), + ], + ["foo", "foo", "foo"], + ], + dtype=object, + ).T + tm.assert_numpy_array_equal(result, expected) + + # interleave with only datetime64[ns] + result = timezone_frame.values + expected = np.array( + [ + [ + Timestamp("2013-01-01 00:00:00"), + Timestamp("2013-01-02 00:00:00"), + Timestamp("2013-01-03 00:00:00"), + ], + [ + Timestamp("2013-01-01 00:00:00-0500", tz="US/Eastern"), + NaT, + Timestamp("2013-01-03 00:00:00-0500", tz="US/Eastern"), + ], + [ + Timestamp("2013-01-01 00:00:00+0100", tz="CET"), + NaT, + Timestamp("2013-01-03 00:00:00+0100", tz="CET"), + ], + ], + dtype=object, + ).T + tm.assert_numpy_array_equal(result, expected) + + def test_values_interleave_non_unique_cols(self): + df = DataFrame( + [[Timestamp("20130101"), 3.5], [Timestamp("20130102"), 4.5]], + columns=["x", "x"], + index=[1, 2], + ) + + df_unique = df.copy() + df_unique.columns = ["x", "y"] + assert df_unique.values.shape == df.values.shape + tm.assert_numpy_array_equal(df_unique.values[0], df.values[0]) + tm.assert_numpy_array_equal(df_unique.values[1], df.values[1]) + + def test_values_numeric_cols(self, float_frame): + float_frame["foo"] = "bar" + + values = float_frame[["A", "B", "C", "D"]].values + assert values.dtype == np.float64 + + def test_values_lcd(self, mixed_float_frame, mixed_int_frame): + # mixed lcd + values = mixed_float_frame[["A", "B", "C", "D"]].values + assert values.dtype == np.float64 + + values = mixed_float_frame[["A", "B", "C"]].values + assert values.dtype == np.float32 + + values = mixed_float_frame[["C"]].values + assert values.dtype == np.float16 + + # GH#10364 + # B uint64 forces float because there are other signed int types + values = mixed_int_frame[["A", "B", "C", "D"]].values + assert values.dtype == np.float64 + + values = mixed_int_frame[["A", "D"]].values + assert values.dtype == np.int64 + + # B uint64 forces float because there are other signed int types + values = mixed_int_frame[["A", "B", "C"]].values + assert values.dtype == np.float64 + + # as B and C are both unsigned, no forcing to float is needed + values = mixed_int_frame[["B", "C"]].values + assert values.dtype == np.uint64 + + values = mixed_int_frame[["A", "C"]].values + assert values.dtype == np.int32 + + values = mixed_int_frame[["C", "D"]].values + assert values.dtype == np.int64 + + values = mixed_int_frame[["A"]].values + assert values.dtype == np.int32 + + values = mixed_int_frame[["C"]].values + assert values.dtype == np.uint8 + + +class TestPrivateValues: + @td.skip_array_manager_invalid_test + def test_private_values_dt64tz(self, using_copy_on_write): + dta = date_range("2000", periods=4, tz="US/Central")._data.reshape(-1, 1) + + df = DataFrame(dta, columns=["A"]) + tm.assert_equal(df._values, dta) + + if using_copy_on_write: + assert not np.shares_memory(df._values._ndarray, dta._ndarray) + else: + # we have a view + assert np.shares_memory(df._values._ndarray, dta._ndarray) + + # TimedeltaArray + tda = dta - dta + df2 = df - df + tm.assert_equal(df2._values, tda) + + @td.skip_array_manager_invalid_test + def test_private_values_dt64tz_multicol(self, using_copy_on_write): + dta = date_range("2000", periods=8, tz="US/Central")._data.reshape(-1, 2) + + df = DataFrame(dta, columns=["A", "B"]) + tm.assert_equal(df._values, dta) + + if using_copy_on_write: + assert not np.shares_memory(df._values._ndarray, dta._ndarray) + else: + # we have a view + assert np.shares_memory(df._values._ndarray, dta._ndarray) + + # TimedeltaArray + tda = dta - dta + df2 = df - df + tm.assert_equal(df2._values, tda) + + def test_private_values_dt64_multiblock(self): + dta = date_range("2000", periods=8)._data + + df = DataFrame({"A": dta[:4]}, copy=False) + df["B"] = dta[4:] + + assert len(df._mgr.arrays) == 2 + + result = df._values + expected = dta.reshape(2, 4).T + tm.assert_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_alter_axes.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_alter_axes.py new file mode 100644 index 0000000000000000000000000000000000000000..c68171ab254c7c8582a206a8e9b44b3845c47efc --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_alter_axes.py @@ -0,0 +1,30 @@ +from datetime import datetime + +import pytz + +from pandas import DataFrame +import pandas._testing as tm + + +class TestDataFrameAlterAxes: + # Tests for setting index/columns attributes directly (i.e. __setattr__) + + def test_set_axis_setattr_index(self): + # GH 6785 + # set the index manually + + df = DataFrame([{"ts": datetime(2014, 4, 1, tzinfo=pytz.utc), "foo": 1}]) + expected = df.set_index("ts") + df.index = df["ts"] + df.pop("ts") + tm.assert_frame_equal(df, expected) + + # Renaming + + def test_assign_columns(self, float_frame): + float_frame["hi"] = "there" + + df = float_frame.copy() + df.columns = ["foo", "bar", "baz", "quux", "foo2"] + tm.assert_series_equal(float_frame["C"], df["baz"], check_names=False) + tm.assert_series_equal(float_frame["hi"], df["foo2"], check_names=False) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_api.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_api.py new file mode 100644 index 0000000000000000000000000000000000000000..6c6944f806a2ae77b4a826684a9474769cd18e30 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_api.py @@ -0,0 +1,395 @@ +from copy import deepcopy +import inspect +import pydoc + +import numpy as np +import pytest + +from pandas._config import using_string_dtype +from pandas._config.config import option_context + +from pandas.compat import HAS_PYARROW + +import pandas as pd +from pandas import ( + DataFrame, + Series, + date_range, + timedelta_range, +) +import pandas._testing as tm + + +class TestDataFrameMisc: + def test_getitem_pop_assign_name(self, float_frame): + s = float_frame["A"] + assert s.name == "A" + + s = float_frame.pop("A") + assert s.name == "A" + + s = float_frame.loc[:, "B"] + assert s.name == "B" + + s2 = s.loc[:] + assert s2.name == "B" + + def test_get_axis(self, float_frame): + f = float_frame + assert f._get_axis_number(0) == 0 + assert f._get_axis_number(1) == 1 + assert f._get_axis_number("index") == 0 + assert f._get_axis_number("rows") == 0 + assert f._get_axis_number("columns") == 1 + + assert f._get_axis_name(0) == "index" + assert f._get_axis_name(1) == "columns" + assert f._get_axis_name("index") == "index" + assert f._get_axis_name("rows") == "index" + assert f._get_axis_name("columns") == "columns" + + assert f._get_axis(0) is f.index + assert f._get_axis(1) is f.columns + + with pytest.raises(ValueError, match="No axis named"): + f._get_axis_number(2) + + with pytest.raises(ValueError, match="No axis.*foo"): + f._get_axis_name("foo") + + with pytest.raises(ValueError, match="No axis.*None"): + f._get_axis_name(None) + + with pytest.raises(ValueError, match="No axis named"): + f._get_axis_number(None) + + def test_column_contains_raises(self, float_frame): + with pytest.raises(TypeError, match="unhashable type: 'Index'"): + float_frame.columns in float_frame + + def test_tab_completion(self): + # DataFrame whose columns are identifiers shall have them in __dir__. + df = DataFrame([list("abcd"), list("efgh")], columns=list("ABCD")) + for key in list("ABCD"): + assert key in dir(df) + assert isinstance(df.__getitem__("A"), Series) + + # DataFrame whose first-level columns are identifiers shall have + # them in __dir__. + df = DataFrame( + [list("abcd"), list("efgh")], + columns=pd.MultiIndex.from_tuples(list(zip("ABCD", "EFGH"))), + ) + for key in list("ABCD"): + assert key in dir(df) + for key in list("EFGH"): + assert key not in dir(df) + assert isinstance(df.__getitem__("A"), DataFrame) + + def test_display_max_dir_items(self): + # display.max_dir_items increaes the number of columns that are in __dir__. + columns = ["a" + str(i) for i in range(420)] + values = [range(420), range(420)] + df = DataFrame(values, columns=columns) + + # The default value for display.max_dir_items is 100 + assert "a99" in dir(df) + assert "a100" not in dir(df) + + with option_context("display.max_dir_items", 300): + df = DataFrame(values, columns=columns) + assert "a299" in dir(df) + assert "a300" not in dir(df) + + with option_context("display.max_dir_items", None): + df = DataFrame(values, columns=columns) + assert "a419" in dir(df) + + def test_not_hashable(self): + empty_frame = DataFrame() + + df = DataFrame([1]) + msg = "unhashable type: 'DataFrame'" + with pytest.raises(TypeError, match=msg): + hash(df) + with pytest.raises(TypeError, match=msg): + hash(empty_frame) + + @pytest.mark.xfail( + using_string_dtype() and HAS_PYARROW, reason="surrogates not allowed" + ) + def test_column_name_contains_unicode_surrogate(self): + # GH 25509 + colname = "\ud83d" + df = DataFrame({colname: []}) + # this should not crash + assert colname not in dir(df) + assert df.columns[0] == colname + + def test_new_empty_index(self): + df1 = DataFrame(np.random.default_rng(2).standard_normal((0, 3))) + df2 = DataFrame(np.random.default_rng(2).standard_normal((0, 3))) + df1.index.name = "foo" + assert df2.index.name is None + + def test_get_agg_axis(self, float_frame): + cols = float_frame._get_agg_axis(0) + assert cols is float_frame.columns + + idx = float_frame._get_agg_axis(1) + assert idx is float_frame.index + + msg = r"Axis must be 0 or 1 \(got 2\)" + with pytest.raises(ValueError, match=msg): + float_frame._get_agg_axis(2) + + def test_empty(self, float_frame, float_string_frame): + empty_frame = DataFrame() + assert empty_frame.empty + + assert not float_frame.empty + assert not float_string_frame.empty + + # corner case + df = DataFrame({"A": [1.0, 2.0, 3.0], "B": ["a", "b", "c"]}, index=np.arange(3)) + del df["A"] + assert not df.empty + + def test_len(self, float_frame): + assert len(float_frame) == len(float_frame.index) + + # single block corner case + arr = float_frame[["A", "B"]].values + expected = float_frame.reindex(columns=["A", "B"]).values + tm.assert_almost_equal(arr, expected) + + def test_axis_aliases(self, float_frame): + f = float_frame + + # reg name + expected = f.sum(axis=0) + result = f.sum(axis="index") + tm.assert_series_equal(result, expected) + + expected = f.sum(axis=1) + result = f.sum(axis="columns") + tm.assert_series_equal(result, expected) + + def test_class_axis(self): + # GH 18147 + # no exception and no empty docstring + assert pydoc.getdoc(DataFrame.index) + assert pydoc.getdoc(DataFrame.columns) + + def test_series_put_names(self, float_string_frame): + series = float_string_frame._series + for k, v in series.items(): + assert v.name == k + + def test_empty_nonzero(self): + df = DataFrame([1, 2, 3]) + assert not df.empty + df = DataFrame(index=[1], columns=[1]) + assert not df.empty + df = DataFrame(index=["a", "b"], columns=["c", "d"]).dropna() + assert df.empty + assert df.T.empty + + @pytest.mark.parametrize( + "df", + [ + DataFrame(), + DataFrame(index=[1]), + DataFrame(columns=[1]), + DataFrame({1: []}), + ], + ) + def test_empty_like(self, df): + assert df.empty + assert df.T.empty + + def test_with_datetimelikes(self): + df = DataFrame( + { + "A": date_range("20130101", periods=10), + "B": timedelta_range("1 day", periods=10), + } + ) + t = df.T + + result = t.dtypes.value_counts() + expected = Series({np.dtype("object"): 10}, name="count") + tm.assert_series_equal(result, expected) + + def test_deepcopy(self, float_frame): + cp = deepcopy(float_frame) + cp.loc[0, "A"] = 10 + assert not float_frame.equals(cp) + + def test_inplace_return_self(self): + # GH 1893 + + data = DataFrame( + {"a": ["foo", "bar", "baz", "qux"], "b": [0, 0, 1, 1], "c": [1, 2, 3, 4]} + ) + + def _check_f(base, f): + result = f(base) + assert result is None + + # -----DataFrame----- + + # set_index + f = lambda x: x.set_index("a", inplace=True) + _check_f(data.copy(), f) + + # reset_index + f = lambda x: x.reset_index(inplace=True) + _check_f(data.set_index("a"), f) + + # drop_duplicates + f = lambda x: x.drop_duplicates(inplace=True) + _check_f(data.copy(), f) + + # sort + f = lambda x: x.sort_values("b", inplace=True) + _check_f(data.copy(), f) + + # sort_index + f = lambda x: x.sort_index(inplace=True) + _check_f(data.copy(), f) + + # fillna + f = lambda x: x.fillna(0, inplace=True) + _check_f(data.copy(), f) + + # replace + f = lambda x: x.replace(1, 0, inplace=True) + _check_f(data.copy(), f) + + # rename + f = lambda x: x.rename({1: "foo"}, inplace=True) + _check_f(data.copy(), f) + + # -----Series----- + d = data.copy()["c"] + + # reset_index + f = lambda x: x.reset_index(inplace=True, drop=True) + _check_f(data.set_index("a")["c"], f) + + # fillna + f = lambda x: x.fillna(0, inplace=True) + _check_f(d.copy(), f) + + # replace + f = lambda x: x.replace(1, 0, inplace=True) + _check_f(d.copy(), f) + + # rename + f = lambda x: x.rename({1: "foo"}, inplace=True) + _check_f(d.copy(), f) + + def test_tab_complete_warning(self, ip, frame_or_series): + # GH 16409 + pytest.importorskip("IPython", minversion="6.0.0") + from IPython.core.completer import provisionalcompleter + + if frame_or_series is DataFrame: + code = "from pandas import DataFrame; obj = DataFrame()" + else: + code = "from pandas import Series; obj = Series(dtype=object)" + + ip.run_cell(code) + # GH 31324 newer jedi version raises Deprecation warning; + # appears resolved 2021-02-02 + with tm.assert_produces_warning(None, raise_on_extra_warnings=False): + with provisionalcompleter("ignore"): + list(ip.Completer.completions("obj.", 1)) + + def test_attrs(self): + df = DataFrame({"A": [2, 3]}) + assert df.attrs == {} + df.attrs["version"] = 1 + + result = df.rename(columns=str) + assert result.attrs == {"version": 1} + + def test_attrs_deepcopy(self): + df = DataFrame({"A": [2, 3]}) + assert df.attrs == {} + df.attrs["tags"] = {"spam", "ham"} + + result = df.rename(columns=str) + assert result.attrs == df.attrs + assert result.attrs["tags"] is not df.attrs["tags"] + + @pytest.mark.parametrize("allows_duplicate_labels", [True, False, None]) + def test_set_flags( + self, + allows_duplicate_labels, + frame_or_series, + using_copy_on_write, + warn_copy_on_write, + ): + obj = DataFrame({"A": [1, 2]}) + key = (0, 0) + if frame_or_series is Series: + obj = obj["A"] + key = 0 + + result = obj.set_flags(allows_duplicate_labels=allows_duplicate_labels) + + if allows_duplicate_labels is None: + # We don't update when it's not provided + assert result.flags.allows_duplicate_labels is True + else: + assert result.flags.allows_duplicate_labels is allows_duplicate_labels + + # We made a copy + assert obj is not result + + # We didn't mutate obj + assert obj.flags.allows_duplicate_labels is True + + # But we didn't copy data + if frame_or_series is Series: + assert np.may_share_memory(obj.values, result.values) + else: + assert np.may_share_memory(obj["A"].values, result["A"].values) + + with tm.assert_cow_warning(warn_copy_on_write): + result.iloc[key] = 0 + if using_copy_on_write: + assert obj.iloc[key] == 1 + else: + assert obj.iloc[key] == 0 + # set back to 1 for test below + with tm.assert_cow_warning(warn_copy_on_write): + result.iloc[key] = 1 + + # Now we do copy. + result = obj.set_flags( + copy=True, allows_duplicate_labels=allows_duplicate_labels + ) + result.iloc[key] = 10 + assert obj.iloc[key] == 1 + + def test_constructor_expanddim(self): + # GH#33628 accessing _constructor_expanddim should not raise NotImplementedError + # GH38782 pandas has no container higher than DataFrame (two-dim), so + # DataFrame._constructor_expand_dim, doesn't make sense, so is removed. + df = DataFrame() + + msg = "'DataFrame' object has no attribute '_constructor_expanddim'" + with pytest.raises(AttributeError, match=msg): + df._constructor_expanddim(np.arange(27).reshape(3, 3, 3)) + + def test_inspect_getmembers(self): + # GH38740 + df = DataFrame() + msg = "DataFrame._data is deprecated" + with tm.assert_produces_warning( + DeprecationWarning, match=msg, check_stacklevel=False + ): + inspect.getmembers(df) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_arithmetic.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_arithmetic.py new file mode 100644 index 0000000000000000000000000000000000000000..195126f1c53822f103d2c558ebb2843feac45a30 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_arithmetic.py @@ -0,0 +1,2145 @@ +from collections import deque +from datetime import ( + datetime, + timezone, +) +from enum import Enum +import functools +import operator +import re + +import numpy as np +import pytest + +from pandas.compat import HAS_PYARROW +import pandas.util._test_decorators as td + +import pandas as pd +from pandas import ( + DataFrame, + Index, + MultiIndex, + Series, +) +import pandas._testing as tm +from pandas.core.computation import expressions as expr +from pandas.tests.frame.common import ( + _check_mixed_float, + _check_mixed_int, +) + + +@pytest.fixture +def simple_frame(): + """ + Fixture for simple 3x3 DataFrame + + Columns are ['one', 'two', 'three'], index is ['a', 'b', 'c']. + + one two three + a 1.0 2.0 3.0 + b 4.0 5.0 6.0 + c 7.0 8.0 9.0 + """ + arr = np.array([[1.0, 2.0, 3.0], [4.0, 5.0, 6.0], [7.0, 8.0, 9.0]]) + + return DataFrame(arr, columns=["one", "two", "three"], index=["a", "b", "c"]) + + +@pytest.fixture(autouse=True, params=[0, 100], ids=["numexpr", "python"]) +def switch_numexpr_min_elements(request, monkeypatch): + with monkeypatch.context() as m: + m.setattr(expr, "_MIN_ELEMENTS", request.param) + yield request.param + + +class DummyElement: + def __init__(self, value, dtype) -> None: + self.value = value + self.dtype = np.dtype(dtype) + + def __array__(self, dtype=None, copy=None): + return np.array(self.value, dtype=self.dtype) + + def __str__(self) -> str: + return f"DummyElement({self.value}, {self.dtype})" + + def __repr__(self) -> str: + return str(self) + + def astype(self, dtype, copy=False): + self.dtype = dtype + return self + + def view(self, dtype): + return type(self)(self.value.view(dtype), dtype) + + def any(self, axis=None): + return bool(self.value) + + +# ------------------------------------------------------------------- +# Comparisons + + +class TestFrameComparisons: + # Specifically _not_ flex-comparisons + + def test_comparison_with_categorical_dtype(self): + # GH#12564 + + df = DataFrame({"A": ["foo", "bar", "baz"]}) + exp = DataFrame({"A": [True, False, False]}) + + res = df == "foo" + tm.assert_frame_equal(res, exp) + + # casting to categorical shouldn't affect the result + df["A"] = df["A"].astype("category") + + res = df == "foo" + tm.assert_frame_equal(res, exp) + + def test_frame_in_list(self): + # GH#12689 this should raise at the DataFrame level, not blocks + df = DataFrame( + np.random.default_rng(2).standard_normal((6, 4)), columns=list("ABCD") + ) + msg = "The truth value of a DataFrame is ambiguous" + with pytest.raises(ValueError, match=msg): + df in [None] + + @pytest.mark.parametrize( + "arg, arg2", + [ + [ + { + "a": np.random.default_rng(2).integers(10, size=10), + "b": pd.date_range("20010101", periods=10), + }, + { + "a": np.random.default_rng(2).integers(10, size=10), + "b": np.random.default_rng(2).integers(10, size=10), + }, + ], + [ + { + "a": np.random.default_rng(2).integers(10, size=10), + "b": np.random.default_rng(2).integers(10, size=10), + }, + { + "a": np.random.default_rng(2).integers(10, size=10), + "b": pd.date_range("20010101", periods=10), + }, + ], + [ + { + "a": pd.date_range("20010101", periods=10), + "b": pd.date_range("20010101", periods=10), + }, + { + "a": np.random.default_rng(2).integers(10, size=10), + "b": np.random.default_rng(2).integers(10, size=10), + }, + ], + [ + { + "a": np.random.default_rng(2).integers(10, size=10), + "b": pd.date_range("20010101", periods=10), + }, + { + "a": pd.date_range("20010101", periods=10), + "b": pd.date_range("20010101", periods=10), + }, + ], + ], + ) + def test_comparison_invalid(self, arg, arg2): + # GH4968 + # invalid date/int comparisons + x = DataFrame(arg) + y = DataFrame(arg2) + # we expect the result to match Series comparisons for + # == and !=, inequalities should raise + result = x == y + expected = DataFrame( + {col: x[col] == y[col] for col in x.columns}, + index=x.index, + columns=x.columns, + ) + tm.assert_frame_equal(result, expected) + + result = x != y + expected = DataFrame( + {col: x[col] != y[col] for col in x.columns}, + index=x.index, + columns=x.columns, + ) + tm.assert_frame_equal(result, expected) + + msgs = [ + r"Invalid comparison between dtype=datetime64\[ns\] and ndarray", + "invalid type promotion", + ( + # npdev 1.20.0 + r"The DTypes and " + r" do not have a common DType." + ), + ] + msg = "|".join(msgs) + with pytest.raises(TypeError, match=msg): + x >= y + with pytest.raises(TypeError, match=msg): + x > y + with pytest.raises(TypeError, match=msg): + x < y + with pytest.raises(TypeError, match=msg): + x <= y + + @pytest.mark.parametrize( + "left, right", + [ + ("gt", "lt"), + ("lt", "gt"), + ("ge", "le"), + ("le", "ge"), + ("eq", "eq"), + ("ne", "ne"), + ], + ) + def test_timestamp_compare(self, left, right): + # make sure we can compare Timestamps on the right AND left hand side + # GH#4982 + df = DataFrame( + { + "dates1": pd.date_range("20010101", periods=10), + "dates2": pd.date_range("20010102", periods=10), + "intcol": np.random.default_rng(2).integers(1000000000, size=10), + "floatcol": np.random.default_rng(2).standard_normal(10), + "stringcol": [chr(100 + i) for i in range(10)], + } + ) + df.loc[np.random.default_rng(2).random(len(df)) > 0.5, "dates2"] = pd.NaT + left_f = getattr(operator, left) + right_f = getattr(operator, right) + + # no nats + if left in ["eq", "ne"]: + expected = left_f(df, pd.Timestamp("20010109")) + result = right_f(pd.Timestamp("20010109"), df) + tm.assert_frame_equal(result, expected) + else: + msg = ( + "'(<|>)=?' not supported between " + "instances of 'numpy.ndarray' and 'Timestamp'" + ) + with pytest.raises(TypeError, match=msg): + left_f(df, pd.Timestamp("20010109")) + with pytest.raises(TypeError, match=msg): + right_f(pd.Timestamp("20010109"), df) + # nats + if left in ["eq", "ne"]: + expected = left_f(df, pd.Timestamp("nat")) + result = right_f(pd.Timestamp("nat"), df) + tm.assert_frame_equal(result, expected) + else: + msg = ( + "'(<|>)=?' not supported between " + "instances of 'numpy.ndarray' and 'NaTType'" + ) + with pytest.raises(TypeError, match=msg): + left_f(df, pd.Timestamp("nat")) + with pytest.raises(TypeError, match=msg): + right_f(pd.Timestamp("nat"), df) + + def test_mixed_comparison(self): + # GH#13128, GH#22163 != datetime64 vs non-dt64 should be False, + # not raise TypeError + # (this appears to be fixed before GH#22163, not sure when) + df = DataFrame([["1989-08-01", 1], ["1989-08-01", 2]]) + other = DataFrame([["a", "b"], ["c", "d"]]) + + result = df == other + assert not result.any().any() + + result = df != other + assert result.all().all() + + def test_df_boolean_comparison_error(self): + # GH#4576, GH#22880 + # comparing DataFrame against list/tuple with len(obj) matching + # len(df.columns) is supported as of GH#22800 + df = DataFrame(np.arange(6).reshape((3, 2))) + + expected = DataFrame([[False, False], [True, False], [False, False]]) + + result = df == (2, 2) + tm.assert_frame_equal(result, expected) + + result = df == [2, 2] + tm.assert_frame_equal(result, expected) + + def test_df_float_none_comparison(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((8, 3)), + index=range(8), + columns=["A", "B", "C"], + ) + + result = df.__eq__(None) + assert not result.any().any() + + def test_df_string_comparison(self): + df = DataFrame([{"a": 1, "b": "foo"}, {"a": 2, "b": "bar"}]) + mask_a = df.a > 1 + tm.assert_frame_equal(df[mask_a], df.loc[1:1, :]) + tm.assert_frame_equal(df[-mask_a], df.loc[0:0, :]) + + mask_b = df.b == "foo" + tm.assert_frame_equal(df[mask_b], df.loc[0:0, :]) + tm.assert_frame_equal(df[-mask_b], df.loc[1:1, :]) + + +class TestFrameFlexComparisons: + # TODO: test_bool_flex_frame needs a better name + @pytest.mark.parametrize("op", ["eq", "ne", "gt", "lt", "ge", "le"]) + def test_bool_flex_frame(self, op): + data = np.random.default_rng(2).standard_normal((5, 3)) + other_data = np.random.default_rng(2).standard_normal((5, 3)) + df = DataFrame(data) + other = DataFrame(other_data) + ndim_5 = np.ones(df.shape + (1, 3)) + + # DataFrame + assert df.eq(df).values.all() + assert not df.ne(df).values.any() + f = getattr(df, op) + o = getattr(operator, op) + # No NAs + tm.assert_frame_equal(f(other), o(df, other)) + # Unaligned + part_o = other.loc[3:, 1:].copy() + rs = f(part_o) + xp = o(df, part_o.reindex(index=df.index, columns=df.columns)) + tm.assert_frame_equal(rs, xp) + # ndarray + tm.assert_frame_equal(f(other.values), o(df, other.values)) + # scalar + tm.assert_frame_equal(f(0), o(df, 0)) + # NAs + msg = "Unable to coerce to Series/DataFrame" + tm.assert_frame_equal(f(np.nan), o(df, np.nan)) + with pytest.raises(ValueError, match=msg): + f(ndim_5) + + @pytest.mark.parametrize("box", [np.array, Series]) + def test_bool_flex_series(self, box): + # Series + # list/tuple + data = np.random.default_rng(2).standard_normal((5, 3)) + df = DataFrame(data) + idx_ser = box(np.random.default_rng(2).standard_normal(5)) + col_ser = box(np.random.default_rng(2).standard_normal(3)) + + idx_eq = df.eq(idx_ser, axis=0) + col_eq = df.eq(col_ser) + idx_ne = df.ne(idx_ser, axis=0) + col_ne = df.ne(col_ser) + tm.assert_frame_equal(col_eq, df == Series(col_ser)) + tm.assert_frame_equal(col_eq, -col_ne) + tm.assert_frame_equal(idx_eq, -idx_ne) + tm.assert_frame_equal(idx_eq, df.T.eq(idx_ser).T) + tm.assert_frame_equal(col_eq, df.eq(list(col_ser))) + tm.assert_frame_equal(idx_eq, df.eq(Series(idx_ser), axis=0)) + tm.assert_frame_equal(idx_eq, df.eq(list(idx_ser), axis=0)) + + idx_gt = df.gt(idx_ser, axis=0) + col_gt = df.gt(col_ser) + idx_le = df.le(idx_ser, axis=0) + col_le = df.le(col_ser) + + tm.assert_frame_equal(col_gt, df > Series(col_ser)) + tm.assert_frame_equal(col_gt, -col_le) + tm.assert_frame_equal(idx_gt, -idx_le) + tm.assert_frame_equal(idx_gt, df.T.gt(idx_ser).T) + + idx_ge = df.ge(idx_ser, axis=0) + col_ge = df.ge(col_ser) + idx_lt = df.lt(idx_ser, axis=0) + col_lt = df.lt(col_ser) + tm.assert_frame_equal(col_ge, df >= Series(col_ser)) + tm.assert_frame_equal(col_ge, -col_lt) + tm.assert_frame_equal(idx_ge, -idx_lt) + tm.assert_frame_equal(idx_ge, df.T.ge(idx_ser).T) + + idx_ser = Series(np.random.default_rng(2).standard_normal(5)) + col_ser = Series(np.random.default_rng(2).standard_normal(3)) + + def test_bool_flex_frame_na(self): + df = DataFrame(np.random.default_rng(2).standard_normal((5, 3))) + # NA + df.loc[0, 0] = np.nan + rs = df.eq(df) + assert not rs.loc[0, 0] + rs = df.ne(df) + assert rs.loc[0, 0] + rs = df.gt(df) + assert not rs.loc[0, 0] + rs = df.lt(df) + assert not rs.loc[0, 0] + rs = df.ge(df) + assert not rs.loc[0, 0] + rs = df.le(df) + assert not rs.loc[0, 0] + + def test_bool_flex_frame_complex_dtype(self): + # complex + arr = np.array([np.nan, 1, 6, np.nan]) + arr2 = np.array([2j, np.nan, 7, None]) + df = DataFrame({"a": arr}) + df2 = DataFrame({"a": arr2}) + + msg = "|".join( + [ + "'>' not supported between instances of '.*' and 'complex'", + r"unorderable types: .*complex\(\)", # PY35 + ] + ) + with pytest.raises(TypeError, match=msg): + # inequalities are not well-defined for complex numbers + df.gt(df2) + with pytest.raises(TypeError, match=msg): + # regression test that we get the same behavior for Series + df["a"].gt(df2["a"]) + with pytest.raises(TypeError, match=msg): + # Check that we match numpy behavior here + df.values > df2.values + + rs = df.ne(df2) + assert rs.values.all() + + arr3 = np.array([2j, np.nan, None]) + df3 = DataFrame({"a": arr3}) + + with pytest.raises(TypeError, match=msg): + # inequalities are not well-defined for complex numbers + df3.gt(2j) + with pytest.raises(TypeError, match=msg): + # regression test that we get the same behavior for Series + df3["a"].gt(2j) + with pytest.raises(TypeError, match=msg): + # Check that we match numpy behavior here + df3.values > 2j + + def test_bool_flex_frame_object_dtype(self): + # corner, dtype=object + df1 = DataFrame({"col": ["foo", np.nan, "bar"]}, dtype=object) + df2 = DataFrame({"col": ["foo", datetime.now(), "bar"]}, dtype=object) + result = df1.ne(df2) + exp = DataFrame({"col": [False, True, False]}) + tm.assert_frame_equal(result, exp) + + def test_flex_comparison_nat(self): + # GH 15697, GH 22163 df.eq(pd.NaT) should behave like df == pd.NaT, + # and _definitely_ not be NaN + df = DataFrame([pd.NaT]) + + result = df == pd.NaT + # result.iloc[0, 0] is a np.bool_ object + assert result.iloc[0, 0].item() is False + + result = df.eq(pd.NaT) + assert result.iloc[0, 0].item() is False + + result = df != pd.NaT + assert result.iloc[0, 0].item() is True + + result = df.ne(pd.NaT) + assert result.iloc[0, 0].item() is True + + @pytest.mark.parametrize("opname", ["eq", "ne", "gt", "lt", "ge", "le"]) + def test_df_flex_cmp_constant_return_types(self, opname): + # GH 15077, non-empty DataFrame + df = DataFrame({"x": [1, 2, 3], "y": [1.0, 2.0, 3.0]}) + const = 2 + + result = getattr(df, opname)(const).dtypes.value_counts() + tm.assert_series_equal( + result, Series([2], index=[np.dtype(bool)], name="count") + ) + + @pytest.mark.parametrize("opname", ["eq", "ne", "gt", "lt", "ge", "le"]) + def test_df_flex_cmp_constant_return_types_empty(self, opname): + # GH 15077 empty DataFrame + df = DataFrame({"x": [1, 2, 3], "y": [1.0, 2.0, 3.0]}) + const = 2 + + empty = df.iloc[:0] + result = getattr(empty, opname)(const).dtypes.value_counts() + tm.assert_series_equal( + result, Series([2], index=[np.dtype(bool)], name="count") + ) + + def test_df_flex_cmp_ea_dtype_with_ndarray_series(self): + ii = pd.IntervalIndex.from_breaks([1, 2, 3]) + df = DataFrame({"A": ii, "B": ii}) + + ser = Series([0, 0]) + res = df.eq(ser, axis=0) + + expected = DataFrame({"A": [False, False], "B": [False, False]}) + tm.assert_frame_equal(res, expected) + + ser2 = Series([1, 2], index=["A", "B"]) + res2 = df.eq(ser2, axis=1) + tm.assert_frame_equal(res2, expected) + + +# ------------------------------------------------------------------- +# Arithmetic + + +class TestFrameFlexArithmetic: + def test_floordiv_axis0(self): + # make sure we df.floordiv(ser, axis=0) matches column-wise result + arr = np.arange(3) + ser = Series(arr) + df = DataFrame({"A": ser, "B": ser}) + + result = df.floordiv(ser, axis=0) + + expected = DataFrame({col: df[col] // ser for col in df.columns}) + + tm.assert_frame_equal(result, expected) + + result2 = df.floordiv(ser.values, axis=0) + tm.assert_frame_equal(result2, expected) + + def test_df_add_td64_columnwise(self): + # GH 22534 Check that column-wise addition broadcasts correctly + dti = pd.date_range("2016-01-01", periods=10) + tdi = pd.timedelta_range("1", periods=10) + tser = Series(tdi) + df = DataFrame({0: dti, 1: tdi}) + + result = df.add(tser, axis=0) + expected = DataFrame({0: dti + tdi, 1: tdi + tdi}) + tm.assert_frame_equal(result, expected) + + def test_df_add_flex_filled_mixed_dtypes(self): + # GH 19611 + dti = pd.date_range("2016-01-01", periods=3) + ser = Series(["1 Day", "NaT", "2 Days"], dtype="timedelta64[ns]") + df = DataFrame({"A": dti, "B": ser}) + other = DataFrame({"A": ser, "B": ser}) + fill = pd.Timedelta(days=1).to_timedelta64() + result = df.add(other, fill_value=fill) + + expected = DataFrame( + { + "A": Series( + ["2016-01-02", "2016-01-03", "2016-01-05"], dtype="datetime64[ns]" + ), + "B": ser * 2, + } + ) + tm.assert_frame_equal(result, expected) + + def test_arith_flex_frame( + self, all_arithmetic_operators, float_frame, mixed_float_frame + ): + # one instance of parametrized fixture + op = all_arithmetic_operators + + def f(x, y): + # r-versions not in operator-stdlib; get op without "r" and invert + if op.startswith("__r"): + return getattr(operator, op.replace("__r", "__"))(y, x) + return getattr(operator, op)(x, y) + + result = getattr(float_frame, op)(2 * float_frame) + expected = f(float_frame, 2 * float_frame) + tm.assert_frame_equal(result, expected) + + # vs mix float + result = getattr(mixed_float_frame, op)(2 * mixed_float_frame) + expected = f(mixed_float_frame, 2 * mixed_float_frame) + tm.assert_frame_equal(result, expected) + _check_mixed_float(result, dtype={"C": None}) + + @pytest.mark.parametrize("op", ["__add__", "__sub__", "__mul__"]) + def test_arith_flex_frame_mixed( + self, + op, + int_frame, + mixed_int_frame, + mixed_float_frame, + switch_numexpr_min_elements, + ): + f = getattr(operator, op) + + # vs mix int + result = getattr(mixed_int_frame, op)(2 + mixed_int_frame) + expected = f(mixed_int_frame, 2 + mixed_int_frame) + + # no overflow in the uint + dtype = None + if op in ["__sub__"]: + dtype = {"B": "uint64", "C": None} + elif op in ["__add__", "__mul__"]: + dtype = {"C": None} + if expr.USE_NUMEXPR and switch_numexpr_min_elements == 0: + # when using numexpr, the casting rules are slightly different: + # in the `2 + mixed_int_frame` operation, int32 column becomes + # and int64 column (not preserving dtype in operation with Python + # scalar), and then the int32/int64 combo results in int64 result + dtype["A"] = (2 + mixed_int_frame)["A"].dtype + tm.assert_frame_equal(result, expected) + _check_mixed_int(result, dtype=dtype) + + # vs mix float + result = getattr(mixed_float_frame, op)(2 * mixed_float_frame) + expected = f(mixed_float_frame, 2 * mixed_float_frame) + tm.assert_frame_equal(result, expected) + _check_mixed_float(result, dtype={"C": None}) + + # vs plain int + result = getattr(int_frame, op)(2 * int_frame) + expected = f(int_frame, 2 * int_frame) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("dim", range(3, 6)) + def test_arith_flex_frame_raise(self, all_arithmetic_operators, float_frame, dim): + # one instance of parametrized fixture + op = all_arithmetic_operators + + # Check that arrays with dim >= 3 raise + arr = np.ones((1,) * dim) + msg = "Unable to coerce to Series/DataFrame" + with pytest.raises(ValueError, match=msg): + getattr(float_frame, op)(arr) + + def test_arith_flex_frame_corner(self, float_frame): + const_add = float_frame.add(1) + tm.assert_frame_equal(const_add, float_frame + 1) + + # corner cases + result = float_frame.add(float_frame[:0]) + expected = float_frame.sort_index() * np.nan + tm.assert_frame_equal(result, expected) + + result = float_frame[:0].add(float_frame) + expected = float_frame.sort_index() * np.nan + tm.assert_frame_equal(result, expected) + + with pytest.raises(NotImplementedError, match="fill_value"): + float_frame.add(float_frame.iloc[0], fill_value=3) + + with pytest.raises(NotImplementedError, match="fill_value"): + float_frame.add(float_frame.iloc[0], axis="index", fill_value=3) + + @pytest.mark.parametrize("op", ["add", "sub", "mul", "mod"]) + def test_arith_flex_series_ops(self, simple_frame, op): + # after arithmetic refactor, add truediv here + df = simple_frame + + row = df.xs("a") + col = df["two"] + f = getattr(df, op) + op = getattr(operator, op) + tm.assert_frame_equal(f(row), op(df, row)) + tm.assert_frame_equal(f(col, axis=0), op(df.T, col).T) + + def test_arith_flex_series(self, simple_frame): + df = simple_frame + + row = df.xs("a") + col = df["two"] + # special case for some reason + tm.assert_frame_equal(df.add(row, axis=None), df + row) + + # cases which will be refactored after big arithmetic refactor + tm.assert_frame_equal(df.div(row), df / row) + tm.assert_frame_equal(df.div(col, axis=0), (df.T / col).T) + + @pytest.mark.parametrize("dtype", ["int64", "float64"]) + def test_arith_flex_series_broadcasting(self, dtype): + # broadcasting issue in GH 7325 + df = DataFrame(np.arange(3 * 2).reshape((3, 2)), dtype=dtype) + expected = DataFrame([[np.nan, np.inf], [1.0, 1.5], [1.0, 1.25]]) + result = df.div(df[0], axis="index") + tm.assert_frame_equal(result, expected) + + def test_arith_flex_zero_len_raises(self): + # GH 19522 passing fill_value to frame flex arith methods should + # raise even in the zero-length special cases + ser_len0 = Series([], dtype=object) + df_len0 = DataFrame(columns=["A", "B"]) + df = DataFrame([[1, 2], [3, 4]], columns=["A", "B"]) + + with pytest.raises(NotImplementedError, match="fill_value"): + df.add(ser_len0, fill_value="E") + + with pytest.raises(NotImplementedError, match="fill_value"): + df_len0.sub(df["A"], axis=None, fill_value=3) + + def test_flex_add_scalar_fill_value(self): + # GH#12723 + dat = np.array([0, 1, np.nan, 3, 4, 5], dtype="float") + df = DataFrame({"foo": dat}, index=range(6)) + + exp = df.fillna(0).add(2) + res = df.add(2, fill_value=0) + tm.assert_frame_equal(res, exp) + + def test_sub_alignment_with_duplicate_index(self): + # GH#5185 dup aligning operations should work + df1 = DataFrame([1, 2, 3, 4, 5], index=[1, 2, 1, 2, 3]) + df2 = DataFrame([1, 2, 3], index=[1, 2, 3]) + expected = DataFrame([0, 2, 0, 2, 2], index=[1, 1, 2, 2, 3]) + result = df1.sub(df2) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("op", ["__add__", "__mul__", "__sub__", "__truediv__"]) + def test_arithmetic_with_duplicate_columns(self, op): + # operations + df = DataFrame({"A": np.arange(10), "B": np.random.default_rng(2).random(10)}) + expected = getattr(df, op)(df) + expected.columns = ["A", "A"] + df.columns = ["A", "A"] + result = getattr(df, op)(df) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("level", [0, None]) + def test_broadcast_multiindex(self, level): + # GH34388 + df1 = DataFrame({"A": [0, 1, 2], "B": [1, 2, 3]}) + df1.columns = df1.columns.set_names("L1") + + df2 = DataFrame({("A", "C"): [0, 0, 0], ("A", "D"): [0, 0, 0]}) + df2.columns = df2.columns.set_names(["L1", "L2"]) + + result = df1.add(df2, level=level) + expected = DataFrame({("A", "C"): [0, 1, 2], ("A", "D"): [0, 1, 2]}) + expected.columns = expected.columns.set_names(["L1", "L2"]) + + tm.assert_frame_equal(result, expected) + + def test_frame_multiindex_operations(self): + # GH 43321 + df = DataFrame( + {2010: [1, 2, 3], 2020: [3, 4, 5]}, + index=MultiIndex.from_product( + [["a"], ["b"], [0, 1, 2]], names=["scen", "mod", "id"] + ), + ) + + series = Series( + [0.4], + index=MultiIndex.from_product([["b"], ["a"]], names=["mod", "scen"]), + ) + + expected = DataFrame( + {2010: [1.4, 2.4, 3.4], 2020: [3.4, 4.4, 5.4]}, + index=MultiIndex.from_product( + [["a"], ["b"], [0, 1, 2]], names=["scen", "mod", "id"] + ), + ) + result = df.add(series, axis=0) + + tm.assert_frame_equal(result, expected) + + def test_frame_multiindex_operations_series_index_to_frame_index(self): + # GH 43321 + df = DataFrame( + {2010: [1], 2020: [3]}, + index=MultiIndex.from_product([["a"], ["b"]], names=["scen", "mod"]), + ) + + series = Series( + [10.0, 20.0, 30.0], + index=MultiIndex.from_product( + [["a"], ["b"], [0, 1, 2]], names=["scen", "mod", "id"] + ), + ) + + expected = DataFrame( + {2010: [11.0, 21, 31.0], 2020: [13.0, 23.0, 33.0]}, + index=MultiIndex.from_product( + [["a"], ["b"], [0, 1, 2]], names=["scen", "mod", "id"] + ), + ) + result = df.add(series, axis=0) + + tm.assert_frame_equal(result, expected) + + def test_frame_multiindex_operations_no_align(self): + df = DataFrame( + {2010: [1, 2, 3], 2020: [3, 4, 5]}, + index=MultiIndex.from_product( + [["a"], ["b"], [0, 1, 2]], names=["scen", "mod", "id"] + ), + ) + + series = Series( + [0.4], + index=MultiIndex.from_product([["c"], ["a"]], names=["mod", "scen"]), + ) + + expected = DataFrame( + {2010: np.nan, 2020: np.nan}, + index=MultiIndex.from_tuples( + [ + ("a", "b", 0), + ("a", "b", 1), + ("a", "b", 2), + ("a", "c", np.nan), + ], + names=["scen", "mod", "id"], + ), + ) + result = df.add(series, axis=0) + + tm.assert_frame_equal(result, expected) + + def test_frame_multiindex_operations_part_align(self): + df = DataFrame( + {2010: [1, 2, 3], 2020: [3, 4, 5]}, + index=MultiIndex.from_tuples( + [ + ("a", "b", 0), + ("a", "b", 1), + ("a", "c", 2), + ], + names=["scen", "mod", "id"], + ), + ) + + series = Series( + [0.4], + index=MultiIndex.from_product([["b"], ["a"]], names=["mod", "scen"]), + ) + + expected = DataFrame( + {2010: [1.4, 2.4, np.nan], 2020: [3.4, 4.4, np.nan]}, + index=MultiIndex.from_tuples( + [ + ("a", "b", 0), + ("a", "b", 1), + ("a", "c", 2), + ], + names=["scen", "mod", "id"], + ), + ) + result = df.add(series, axis=0) + + tm.assert_frame_equal(result, expected) + + +class TestFrameArithmetic: + def test_td64_op_nat_casting(self): + # Make sure we don't accidentally treat timedelta64(NaT) as datetime64 + # when calling dispatch_to_series in DataFrame arithmetic + ser = Series(["NaT", "NaT"], dtype="timedelta64[ns]") + df = DataFrame([[1, 2], [3, 4]]) + + result = df * ser + expected = DataFrame({0: ser, 1: ser}) + tm.assert_frame_equal(result, expected) + + def test_df_add_2d_array_rowlike_broadcasts(self): + # GH#23000 + arr = np.arange(6).reshape(3, 2) + df = DataFrame(arr, columns=[True, False], index=["A", "B", "C"]) + + rowlike = arr[[1], :] # shape --> (1, ncols) + assert rowlike.shape == (1, df.shape[1]) + + expected = DataFrame( + [[2, 4], [4, 6], [6, 8]], + columns=df.columns, + index=df.index, + # specify dtype explicitly to avoid failing + # on 32bit builds + dtype=arr.dtype, + ) + result = df + rowlike + tm.assert_frame_equal(result, expected) + result = rowlike + df + tm.assert_frame_equal(result, expected) + + def test_df_add_2d_array_collike_broadcasts(self): + # GH#23000 + arr = np.arange(6).reshape(3, 2) + df = DataFrame(arr, columns=[True, False], index=["A", "B", "C"]) + + collike = arr[:, [1]] # shape --> (nrows, 1) + assert collike.shape == (df.shape[0], 1) + + expected = DataFrame( + [[1, 2], [5, 6], [9, 10]], + columns=df.columns, + index=df.index, + # specify dtype explicitly to avoid failing + # on 32bit builds + dtype=arr.dtype, + ) + result = df + collike + tm.assert_frame_equal(result, expected) + result = collike + df + tm.assert_frame_equal(result, expected) + + def test_df_arith_2d_array_rowlike_broadcasts( + self, request, all_arithmetic_operators, using_array_manager + ): + # GH#23000 + opname = all_arithmetic_operators + + if using_array_manager and opname in ("__rmod__", "__rfloordiv__"): + # TODO(ArrayManager) decide on dtypes + td.mark_array_manager_not_yet_implemented(request) + + arr = np.arange(6).reshape(3, 2) + df = DataFrame(arr, columns=[True, False], index=["A", "B", "C"]) + + rowlike = arr[[1], :] # shape --> (1, ncols) + assert rowlike.shape == (1, df.shape[1]) + + exvals = [ + getattr(df.loc["A"], opname)(rowlike.squeeze()), + getattr(df.loc["B"], opname)(rowlike.squeeze()), + getattr(df.loc["C"], opname)(rowlike.squeeze()), + ] + + expected = DataFrame(exvals, columns=df.columns, index=df.index) + + result = getattr(df, opname)(rowlike) + tm.assert_frame_equal(result, expected) + + def test_df_arith_2d_array_collike_broadcasts( + self, request, all_arithmetic_operators, using_array_manager + ): + # GH#23000 + opname = all_arithmetic_operators + + if using_array_manager and opname in ("__rmod__", "__rfloordiv__"): + # TODO(ArrayManager) decide on dtypes + td.mark_array_manager_not_yet_implemented(request) + + arr = np.arange(6).reshape(3, 2) + df = DataFrame(arr, columns=[True, False], index=["A", "B", "C"]) + + collike = arr[:, [1]] # shape --> (nrows, 1) + assert collike.shape == (df.shape[0], 1) + + exvals = { + True: getattr(df[True], opname)(collike.squeeze()), + False: getattr(df[False], opname)(collike.squeeze()), + } + + dtype = None + if opname in ["__rmod__", "__rfloordiv__"]: + # Series ops may return mixed int/float dtypes in cases where + # DataFrame op will return all-float. So we upcast `expected` + dtype = np.common_type(*(x.values for x in exvals.values())) + + expected = DataFrame(exvals, columns=df.columns, index=df.index, dtype=dtype) + + result = getattr(df, opname)(collike) + tm.assert_frame_equal(result, expected) + + def test_df_bool_mul_int(self): + # GH 22047, GH 22163 multiplication by 1 should result in int dtype, + # not object dtype + df = DataFrame([[False, True], [False, False]]) + result = df * 1 + + # On appveyor this comes back as np.int32 instead of np.int64, + # so we check dtype.kind instead of just dtype + kinds = result.dtypes.apply(lambda x: x.kind) + assert (kinds == "i").all() + + result = 1 * df + kinds = result.dtypes.apply(lambda x: x.kind) + assert (kinds == "i").all() + + def test_arith_mixed(self): + left = DataFrame({"A": ["a", "b", "c"], "B": [1, 2, 3]}) + + result = left + left + expected = DataFrame({"A": ["aa", "bb", "cc"], "B": [2, 4, 6]}) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("col", ["A", "B"]) + def test_arith_getitem_commute(self, all_arithmetic_functions, col): + df = DataFrame({"A": [1.1, 3.3], "B": [2.5, -3.9]}) + result = all_arithmetic_functions(df, 1)[col] + expected = all_arithmetic_functions(df[col], 1) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize( + "values", [[1, 2], (1, 2), np.array([1, 2]), range(1, 3), deque([1, 2])] + ) + def test_arith_alignment_non_pandas_object(self, values): + # GH#17901 + df = DataFrame({"A": [1, 1], "B": [1, 1]}) + expected = DataFrame({"A": [2, 2], "B": [3, 3]}) + result = df + values + tm.assert_frame_equal(result, expected) + + def test_arith_non_pandas_object(self): + df = DataFrame( + np.arange(1, 10, dtype="f8").reshape(3, 3), + columns=["one", "two", "three"], + index=["a", "b", "c"], + ) + + val1 = df.xs("a").values + added = DataFrame(df.values + val1, index=df.index, columns=df.columns) + tm.assert_frame_equal(df + val1, added) + + added = DataFrame((df.values.T + val1).T, index=df.index, columns=df.columns) + tm.assert_frame_equal(df.add(val1, axis=0), added) + + val2 = list(df["two"]) + + added = DataFrame(df.values + val2, index=df.index, columns=df.columns) + tm.assert_frame_equal(df + val2, added) + + added = DataFrame((df.values.T + val2).T, index=df.index, columns=df.columns) + tm.assert_frame_equal(df.add(val2, axis="index"), added) + + val3 = np.random.default_rng(2).random(df.shape) + added = DataFrame(df.values + val3, index=df.index, columns=df.columns) + tm.assert_frame_equal(df.add(val3), added) + + def test_operations_with_interval_categories_index(self, all_arithmetic_operators): + # GH#27415 + op = all_arithmetic_operators + ind = pd.CategoricalIndex(pd.interval_range(start=0.0, end=2.0)) + data = [1, 2] + df = DataFrame([data], columns=ind) + num = 10 + result = getattr(df, op)(num) + expected = DataFrame([[getattr(n, op)(num) for n in data]], columns=ind) + tm.assert_frame_equal(result, expected) + + def test_frame_with_frame_reindex(self): + # GH#31623 + df = DataFrame( + { + "foo": [pd.Timestamp("2019"), pd.Timestamp("2020")], + "bar": [pd.Timestamp("2018"), pd.Timestamp("2021")], + }, + columns=["foo", "bar"], + dtype="M8[ns]", + ) + df2 = df[["foo"]] + + result = df - df2 + + expected = DataFrame( + {"foo": [pd.Timedelta(0), pd.Timedelta(0)], "bar": [np.nan, np.nan]}, + columns=["bar", "foo"], + ) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "value, dtype", + [ + (1, "i8"), + (1.0, "f8"), + (2**63, "f8"), + (1j, "complex128"), + (2**63, "complex128"), + (True, "bool"), + (np.timedelta64(20, "ns"), "]=?' not supported between instances of 'str' and 'int'", + "Invalid comparison between dtype=str and int", + ] + ) + with pytest.raises(TypeError, match=msg): + f(df, 0) + + def test_comparison_protected_from_errstate(self): + missing_df = DataFrame( + np.ones((10, 4), dtype=np.float64), + columns=Index(list("ABCD"), dtype=object), + ) + missing_df.loc[missing_df.index[0], "A"] = np.nan + with np.errstate(invalid="ignore"): + expected = missing_df.values < 0 + with np.errstate(invalid="raise"): + result = (missing_df < 0).values + tm.assert_numpy_array_equal(result, expected) + + def test_boolean_comparison(self): + # GH 4576 + # boolean comparisons with a tuple/list give unexpected results + df = DataFrame(np.arange(6).reshape((3, 2))) + b = np.array([2, 2]) + b_r = np.atleast_2d([2, 2]) + b_c = b_r.T + lst = [2, 2, 2] + tup = tuple(lst) + + # gt + expected = DataFrame([[False, False], [False, True], [True, True]]) + result = df > b + tm.assert_frame_equal(result, expected) + + result = df.values > b + tm.assert_numpy_array_equal(result, expected.values) + + msg1d = "Unable to coerce to Series, length must be 2: given 3" + msg2d = "Unable to coerce to DataFrame, shape must be" + msg2db = "operands could not be broadcast together with shapes" + with pytest.raises(ValueError, match=msg1d): + # wrong shape + df > lst + + with pytest.raises(ValueError, match=msg1d): + # wrong shape + df > tup + + # broadcasts like ndarray (GH#23000) + result = df > b_r + tm.assert_frame_equal(result, expected) + + result = df.values > b_r + tm.assert_numpy_array_equal(result, expected.values) + + with pytest.raises(ValueError, match=msg2d): + df > b_c + + with pytest.raises(ValueError, match=msg2db): + df.values > b_c + + # == + expected = DataFrame([[False, False], [True, False], [False, False]]) + result = df == b + tm.assert_frame_equal(result, expected) + + with pytest.raises(ValueError, match=msg1d): + df == lst + + with pytest.raises(ValueError, match=msg1d): + df == tup + + # broadcasts like ndarray (GH#23000) + result = df == b_r + tm.assert_frame_equal(result, expected) + + result = df.values == b_r + tm.assert_numpy_array_equal(result, expected.values) + + with pytest.raises(ValueError, match=msg2d): + df == b_c + + assert df.values.shape != b_c.shape + + # with alignment + df = DataFrame( + np.arange(6).reshape((3, 2)), columns=list("AB"), index=list("abc") + ) + expected.index = df.index + expected.columns = df.columns + + with pytest.raises(ValueError, match=msg1d): + df == lst + + with pytest.raises(ValueError, match=msg1d): + df == tup + + def test_inplace_ops_alignment(self): + # inplace ops / ops alignment + # GH 8511 + + columns = list("abcdefg") + X_orig = DataFrame( + np.arange(10 * len(columns)).reshape(-1, len(columns)), + columns=columns, + index=range(10), + ) + Z = 100 * X_orig.iloc[:, 1:-1].copy() + block1 = list("bedcf") + subs = list("bcdef") + + # add + X = X_orig.copy() + result1 = (X[block1] + Z).reindex(columns=subs) + + X[block1] += Z + result2 = X.reindex(columns=subs) + + X = X_orig.copy() + result3 = (X[block1] + Z[block1]).reindex(columns=subs) + + X[block1] += Z[block1] + result4 = X.reindex(columns=subs) + + tm.assert_frame_equal(result1, result2) + tm.assert_frame_equal(result1, result3) + tm.assert_frame_equal(result1, result4) + + # sub + X = X_orig.copy() + result1 = (X[block1] - Z).reindex(columns=subs) + + X[block1] -= Z + result2 = X.reindex(columns=subs) + + X = X_orig.copy() + result3 = (X[block1] - Z[block1]).reindex(columns=subs) + + X[block1] -= Z[block1] + result4 = X.reindex(columns=subs) + + tm.assert_frame_equal(result1, result2) + tm.assert_frame_equal(result1, result3) + tm.assert_frame_equal(result1, result4) + + def test_inplace_ops_identity(self): + # GH 5104 + # make sure that we are actually changing the object + s_orig = Series([1, 2, 3]) + df_orig = DataFrame( + np.random.default_rng(2).integers(0, 5, size=10).reshape(-1, 5) + ) + + # no dtype change + s = s_orig.copy() + s2 = s + s += 1 + tm.assert_series_equal(s, s2) + tm.assert_series_equal(s_orig + 1, s) + assert s is s2 + assert s._mgr is s2._mgr + + df = df_orig.copy() + df2 = df + df += 1 + tm.assert_frame_equal(df, df2) + tm.assert_frame_equal(df_orig + 1, df) + assert df is df2 + assert df._mgr is df2._mgr + + # dtype change + s = s_orig.copy() + s2 = s + s += 1.5 + tm.assert_series_equal(s, s2) + tm.assert_series_equal(s_orig + 1.5, s) + + df = df_orig.copy() + df2 = df + df += 1.5 + tm.assert_frame_equal(df, df2) + tm.assert_frame_equal(df_orig + 1.5, df) + assert df is df2 + assert df._mgr is df2._mgr + + # mixed dtype + arr = np.random.default_rng(2).integers(0, 10, size=5) + df_orig = DataFrame({"A": arr.copy(), "B": "foo"}) + df = df_orig.copy() + df2 = df + df["A"] += 1 + expected = DataFrame({"A": arr.copy() + 1, "B": "foo"}) + tm.assert_frame_equal(df, expected) + tm.assert_frame_equal(df2, expected) + assert df._mgr is df2._mgr + + df = df_orig.copy() + df2 = df + df["A"] += 1.5 + expected = DataFrame({"A": arr.copy() + 1.5, "B": "foo"}) + tm.assert_frame_equal(df, expected) + tm.assert_frame_equal(df2, expected) + assert df._mgr is df2._mgr + + @pytest.mark.parametrize( + "op", + [ + "add", + "and", + pytest.param( + "div", + marks=pytest.mark.xfail( + raises=AttributeError, reason="__idiv__ not implemented" + ), + ), + "floordiv", + "mod", + "mul", + "or", + "pow", + "sub", + "truediv", + "xor", + ], + ) + def test_inplace_ops_identity2(self, op): + df = DataFrame({"a": [1.0, 2.0, 3.0], "b": [1, 2, 3]}) + + operand = 2 + if op in ("and", "or", "xor"): + # cannot use floats for boolean ops + df["a"] = [True, False, True] + + df_copy = df.copy() + iop = f"__i{op}__" + op = f"__{op}__" + + # no id change and value is correct + getattr(df, iop)(operand) + expected = getattr(df_copy, op)(operand) + tm.assert_frame_equal(df, expected) + expected = id(df) + assert id(df) == expected + + @pytest.mark.parametrize( + "val", + [ + [1, 2, 3], + (1, 2, 3), + np.array([1, 2, 3], dtype=np.int64), + range(1, 4), + ], + ) + def test_alignment_non_pandas(self, val): + index = ["A", "B", "C"] + columns = ["X", "Y", "Z"] + df = DataFrame( + np.random.default_rng(2).standard_normal((3, 3)), + index=index, + columns=columns, + ) + + align = DataFrame._align_for_op + + expected = DataFrame({"X": val, "Y": val, "Z": val}, index=df.index) + tm.assert_frame_equal(align(df, val, axis=0)[1], expected) + + expected = DataFrame( + {"X": [1, 1, 1], "Y": [2, 2, 2], "Z": [3, 3, 3]}, index=df.index + ) + tm.assert_frame_equal(align(df, val, axis=1)[1], expected) + + @pytest.mark.parametrize("val", [[1, 2], (1, 2), np.array([1, 2]), range(1, 3)]) + def test_alignment_non_pandas_length_mismatch(self, val): + index = ["A", "B", "C"] + columns = ["X", "Y", "Z"] + df = DataFrame( + np.random.default_rng(2).standard_normal((3, 3)), + index=index, + columns=columns, + ) + + align = DataFrame._align_for_op + # length mismatch + msg = "Unable to coerce to Series, length must be 3: given 2" + with pytest.raises(ValueError, match=msg): + align(df, val, axis=0) + + with pytest.raises(ValueError, match=msg): + align(df, val, axis=1) + + def test_alignment_non_pandas_index_columns(self): + index = ["A", "B", "C"] + columns = ["X", "Y", "Z"] + df = DataFrame( + np.random.default_rng(2).standard_normal((3, 3)), + index=index, + columns=columns, + ) + + align = DataFrame._align_for_op + val = np.array([[1, 2, 3], [4, 5, 6], [7, 8, 9]]) + tm.assert_frame_equal( + align(df, val, axis=0)[1], + DataFrame(val, index=df.index, columns=df.columns), + ) + tm.assert_frame_equal( + align(df, val, axis=1)[1], + DataFrame(val, index=df.index, columns=df.columns), + ) + + # shape mismatch + msg = "Unable to coerce to DataFrame, shape must be" + val = np.array([[1, 2, 3], [4, 5, 6]]) + with pytest.raises(ValueError, match=msg): + align(df, val, axis=0) + + with pytest.raises(ValueError, match=msg): + align(df, val, axis=1) + + val = np.zeros((3, 3, 3)) + msg = re.escape( + "Unable to coerce to Series/DataFrame, dimension must be <= 2: (3, 3, 3)" + ) + with pytest.raises(ValueError, match=msg): + align(df, val, axis=0) + with pytest.raises(ValueError, match=msg): + align(df, val, axis=1) + + def test_no_warning(self, all_arithmetic_operators): + df = DataFrame({"A": [0.0, 0.0], "B": [0.0, None]}) + b = df["B"] + with tm.assert_produces_warning(None): + getattr(df, all_arithmetic_operators)(b) + + def test_dunder_methods_binary(self, all_arithmetic_operators): + # GH#??? frame.__foo__ should only accept one argument + df = DataFrame({"A": [0.0, 0.0], "B": [0.0, None]}) + b = df["B"] + with pytest.raises(TypeError, match="takes 2 positional arguments"): + getattr(df, all_arithmetic_operators)(b, 0) + + def test_align_int_fill_bug(self): + # GH#910 + X = np.arange(10 * 10, dtype="float64").reshape(10, 10) + Y = np.ones((10, 1), dtype=int) + + df1 = DataFrame(X) + df1["0.X"] = Y.squeeze() + + df2 = df1.astype(float) + + result = df1 - df1.mean() + expected = df2 - df2.mean() + tm.assert_frame_equal(result, expected) + + +def test_pow_with_realignment(): + # GH#32685 pow has special semantics for operating with null values + left = DataFrame({"A": [0, 1, 2]}) + right = DataFrame(index=[0, 1, 2]) + + result = left**right + expected = DataFrame({"A": [np.nan, 1.0, np.nan]}) + tm.assert_frame_equal(result, expected) + + +def test_dataframe_series_extension_dtypes(): + # https://github.com/pandas-dev/pandas/issues/34311 + df = DataFrame( + np.random.default_rng(2).integers(0, 100, (10, 3)), columns=["a", "b", "c"] + ) + ser = Series([1, 2, 3], index=["a", "b", "c"]) + + expected = df.to_numpy("int64") + ser.to_numpy("int64").reshape(-1, 3) + expected = DataFrame(expected, columns=df.columns, dtype="Int64") + + df_ea = df.astype("Int64") + result = df_ea + ser + tm.assert_frame_equal(result, expected) + result = df_ea + ser.astype("Int64") + tm.assert_frame_equal(result, expected) + + +def test_dataframe_blockwise_slicelike(): + # GH#34367 + arr = np.random.default_rng(2).integers(0, 1000, (100, 10)) + df1 = DataFrame(arr) + # Explicit cast to float to avoid implicit cast when setting nan + df2 = df1.copy().astype({1: "float", 3: "float", 7: "float"}) + df2.iloc[0, [1, 3, 7]] = np.nan + + # Explicit cast to float to avoid implicit cast when setting nan + df3 = df1.copy().astype({5: "float"}) + df3.iloc[0, [5]] = np.nan + + # Explicit cast to float to avoid implicit cast when setting nan + df4 = df1.copy().astype({2: "float", 3: "float", 4: "float"}) + df4.iloc[0, np.arange(2, 5)] = np.nan + # Explicit cast to float to avoid implicit cast when setting nan + df5 = df1.copy().astype({4: "float", 5: "float", 6: "float"}) + df5.iloc[0, np.arange(4, 7)] = np.nan + + for left, right in [(df1, df2), (df2, df3), (df4, df5)]: + res = left + right + + expected = DataFrame({i: left[i] + right[i] for i in left.columns}) + tm.assert_frame_equal(res, expected) + + +@pytest.mark.parametrize( + "df, col_dtype", + [ + (DataFrame([[1.0, 2.0], [4.0, 5.0]], columns=list("ab")), "float64"), + ( + DataFrame([[1.0, "b"], [4.0, "b"]], columns=list("ab")).astype( + {"b": object} + ), + "object", + ), + ], +) +def test_dataframe_operation_with_non_numeric_types(df, col_dtype): + # GH #22663 + expected = DataFrame([[0.0, np.nan], [3.0, np.nan]], columns=list("ab")) + expected = expected.astype({"b": col_dtype}) + result = df + Series([-1.0], index=list("a")) + tm.assert_frame_equal(result, expected) + + +def test_arith_reindex_with_duplicates(): + # https://github.com/pandas-dev/pandas/issues/35194 + df1 = DataFrame(data=[[0]], columns=["second"]) + df2 = DataFrame(data=[[0, 0, 0]], columns=["first", "second", "second"]) + result = df1 + df2 + expected = DataFrame([[np.nan, 0, 0]], columns=["first", "second", "second"]) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("to_add", [[Series([1, 1])], [Series([1, 1]), Series([1, 1])]]) +def test_arith_list_of_arraylike_raise(to_add): + # GH 36702. Raise when trying to add list of array-like to DataFrame + df = DataFrame({"x": [1, 2], "y": [1, 2]}) + + msg = f"Unable to coerce list of {type(to_add[0])} to Series/DataFrame" + with pytest.raises(ValueError, match=msg): + df + to_add + with pytest.raises(ValueError, match=msg): + to_add + df + + +def test_inplace_arithmetic_series_update(using_copy_on_write, warn_copy_on_write): + # https://github.com/pandas-dev/pandas/issues/36373 + df = DataFrame({"A": [1, 2, 3]}) + df_orig = df.copy() + series = df["A"] + vals = series._values + + with tm.assert_cow_warning(warn_copy_on_write): + series += 1 + if using_copy_on_write: + assert series._values is not vals + tm.assert_frame_equal(df, df_orig) + else: + assert series._values is vals + + expected = DataFrame({"A": [2, 3, 4]}) + tm.assert_frame_equal(df, expected) + + +def test_arithmetic_multiindex_align(): + """ + Regression test for: https://github.com/pandas-dev/pandas/issues/33765 + """ + df1 = DataFrame( + [[1]], + index=["a"], + columns=MultiIndex.from_product([[0], [1]], names=["a", "b"]), + ) + df2 = DataFrame([[1]], index=["a"], columns=Index([0], name="a")) + expected = DataFrame( + [[0]], + index=["a"], + columns=MultiIndex.from_product([[0], [1]], names=["a", "b"]), + ) + result = df1 - df2 + tm.assert_frame_equal(result, expected) + + +def test_bool_frame_mult_float(): + # GH 18549 + df = DataFrame(True, list("ab"), list("cd")) + result = df * 1.0 + expected = DataFrame(np.ones((2, 2)), list("ab"), list("cd")) + tm.assert_frame_equal(result, expected) + + +def test_frame_sub_nullable_int(any_int_ea_dtype): + # GH 32822 + series1 = Series([1, 2, None], dtype=any_int_ea_dtype) + series2 = Series([1, 2, 3], dtype=any_int_ea_dtype) + expected = DataFrame([0, 0, None], dtype=any_int_ea_dtype) + result = series1.to_frame() - series2.to_frame() + tm.assert_frame_equal(result, expected) + + +@pytest.mark.filterwarnings( + "ignore:Passing a BlockManager|Passing a SingleBlockManager:DeprecationWarning" +) +def test_frame_op_subclass_nonclass_constructor(): + # GH#43201 subclass._constructor is a function, not the subclass itself + + class SubclassedSeries(Series): + @property + def _constructor(self): + return SubclassedSeries + + @property + def _constructor_expanddim(self): + return SubclassedDataFrame + + class SubclassedDataFrame(DataFrame): + _metadata = ["my_extra_data"] + + def __init__(self, my_extra_data, *args, **kwargs) -> None: + self.my_extra_data = my_extra_data + super().__init__(*args, **kwargs) + + @property + def _constructor(self): + return functools.partial(type(self), self.my_extra_data) + + @property + def _constructor_sliced(self): + return SubclassedSeries + + sdf = SubclassedDataFrame("some_data", {"A": [1, 2, 3], "B": [4, 5, 6]}) + result = sdf * 2 + expected = SubclassedDataFrame("some_data", {"A": [2, 4, 6], "B": [8, 10, 12]}) + tm.assert_frame_equal(result, expected) + + result = sdf + sdf + tm.assert_frame_equal(result, expected) + + +def test_enum_column_equality(): + Cols = Enum("Cols", "col1 col2") + + q1 = DataFrame({Cols.col1: [1, 2, 3]}) + q2 = DataFrame({Cols.col1: [1, 2, 3]}) + + result = q1[Cols.col1] == q2[Cols.col1] + expected = Series([True, True, True], name=Cols.col1) + + tm.assert_series_equal(result, expected) + + +def test_mixed_col_index_dtype(using_infer_string): + # GH 47382 + df1 = DataFrame(columns=list("abc"), data=1.0, index=[0]) + df2 = DataFrame(columns=list("abc"), data=0.0, index=[0]) + df1.columns = df2.columns.astype("string") + result = df1 + df2 + expected = DataFrame(columns=list("abc"), data=1.0, index=[0]) + if using_infer_string: + # df2.columns.dtype will be "str" instead of object, + # so the aligned result will be "string", not object + if HAS_PYARROW: + dtype = "string[pyarrow]" + else: + dtype = "string" + expected.columns = expected.columns.astype(dtype) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_arrow_interface.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_arrow_interface.py new file mode 100644 index 0000000000000000000000000000000000000000..b36b6b5ffe0cc3f843243a09cb08a2b74d6b728f --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_arrow_interface.py @@ -0,0 +1,47 @@ +import ctypes + +import pytest + +import pandas.util._test_decorators as td + +import pandas as pd + +pa = pytest.importorskip("pyarrow") + + +@td.skip_if_no("pyarrow", min_version="14.0") +def test_dataframe_arrow_interface(using_infer_string): + df = pd.DataFrame({"a": [1, 2, 3], "b": ["a", "b", "c"]}) + + capsule = df.__arrow_c_stream__() + assert ( + ctypes.pythonapi.PyCapsule_IsValid( + ctypes.py_object(capsule), b"arrow_array_stream" + ) + == 1 + ) + + table = pa.table(df) + string_type = pa.large_string() if using_infer_string else pa.string() + expected = pa.table({"a": [1, 2, 3], "b": pa.array(["a", "b", "c"], string_type)}) + assert table.equals(expected) + + schema = pa.schema([("a", pa.int8()), ("b", pa.string())]) + table = pa.table(df, schema=schema) + expected = expected.cast(schema) + assert table.equals(expected) + + +@td.skip_if_no("pyarrow", min_version="15.0") +def test_dataframe_to_arrow(using_infer_string): + df = pd.DataFrame({"a": [1, 2, 3], "b": ["a", "b", "c"]}) + + table = pa.RecordBatchReader.from_stream(df).read_all() + string_type = pa.large_string() if using_infer_string else pa.string() + expected = pa.table({"a": [1, 2, 3], "b": pa.array(["a", "b", "c"], string_type)}) + assert table.equals(expected) + + schema = pa.schema([("a", pa.int8()), ("b", pa.string())]) + table = pa.RecordBatchReader.from_stream(df, schema=schema).read_all() + expected = expected.cast(schema) + assert table.equals(expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_block_internals.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_block_internals.py new file mode 100644 index 0000000000000000000000000000000000000000..ac3e4f7c9224f9958317aa09080631604f02591b --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_block_internals.py @@ -0,0 +1,453 @@ +from datetime import ( + datetime, + timedelta, +) +import itertools + +import numpy as np +import pytest + +from pandas.compat import WARNING_CHECK_DISABLED +from pandas.errors import PerformanceWarning +import pandas.util._test_decorators as td + +import pandas as pd +from pandas import ( + Categorical, + DataFrame, + Series, + Timestamp, + date_range, + option_context, +) +import pandas._testing as tm +from pandas.core.internals.blocks import NumpyBlock + +# Segregated collection of methods that require the BlockManager internal data +# structure + + +# TODO(ArrayManager) check which of those tests need to be rewritten to test the +# equivalent for ArrayManager +pytestmark = td.skip_array_manager_invalid_test + + +class TestDataFrameBlockInternals: + def test_setitem_invalidates_datetime_index_freq(self): + # GH#24096 altering a datetime64tz column inplace invalidates the + # `freq` attribute on the underlying DatetimeIndex + + dti = date_range("20130101", periods=3, tz="US/Eastern") + ts = dti[1] + + df = DataFrame({"B": dti}) + assert df["B"]._values.freq is None + + df.iloc[1, 0] = pd.NaT + assert df["B"]._values.freq is None + + # check that the DatetimeIndex was not altered in place + assert dti.freq == "D" + assert dti[1] == ts + + def test_cast_internals(self, float_frame): + msg = "Passing a BlockManager to DataFrame" + with tm.assert_produces_warning( + DeprecationWarning, match=msg, check_stacklevel=False + ): + casted = DataFrame(float_frame._mgr, dtype=int) + expected = DataFrame(float_frame._series, dtype=int) + tm.assert_frame_equal(casted, expected) + + with tm.assert_produces_warning( + DeprecationWarning, match=msg, check_stacklevel=False + ): + casted = DataFrame(float_frame._mgr, dtype=np.int32) + expected = DataFrame(float_frame._series, dtype=np.int32) + tm.assert_frame_equal(casted, expected) + + def test_consolidate(self, float_frame): + float_frame["E"] = 7.0 + consolidated = float_frame._consolidate() + assert len(consolidated._mgr.blocks) == 1 + + # Ensure copy, do I want this? + recons = consolidated._consolidate() + assert recons is not consolidated + tm.assert_frame_equal(recons, consolidated) + + float_frame["F"] = 8.0 + assert len(float_frame._mgr.blocks) == 3 + + return_value = float_frame._consolidate_inplace() + assert return_value is None + assert len(float_frame._mgr.blocks) == 1 + + def test_consolidate_inplace(self, float_frame): + # triggers in-place consolidation + for letter in range(ord("A"), ord("Z")): + float_frame[chr(letter)] = chr(letter) + + def test_modify_values(self, float_frame, using_copy_on_write): + if using_copy_on_write: + with pytest.raises(ValueError, match="read-only"): + float_frame.values[5] = 5 + assert (float_frame.values[5] != 5).all() + return + + float_frame.values[5] = 5 + assert (float_frame.values[5] == 5).all() + + # unconsolidated + float_frame["E"] = 7.0 + col = float_frame["E"] + float_frame.values[6] = 6 + # as of 2.0 .values does not consolidate, so subsequent calls to .values + # does not share data + assert not (float_frame.values[6] == 6).all() + + assert (col == 7).all() + + def test_boolean_set_uncons(self, float_frame): + float_frame["E"] = 7.0 + + expected = float_frame.values.copy() + expected[expected > 1] = 2 + + float_frame[float_frame > 1] = 2 + tm.assert_almost_equal(expected, float_frame.values) + + def test_constructor_with_convert(self): + # this is actually mostly a test of lib.maybe_convert_objects + # #2845 + df = DataFrame({"A": [2**63 - 1]}) + result = df["A"] + expected = Series(np.asarray([2**63 - 1], np.int64), name="A") + tm.assert_series_equal(result, expected) + + df = DataFrame({"A": [2**63]}) + result = df["A"] + expected = Series(np.asarray([2**63], np.uint64), name="A") + tm.assert_series_equal(result, expected) + + df = DataFrame({"A": [datetime(2005, 1, 1), True]}) + result = df["A"] + expected = Series( + np.asarray([datetime(2005, 1, 1), True], np.object_), name="A" + ) + tm.assert_series_equal(result, expected) + + df = DataFrame({"A": [None, 1]}) + result = df["A"] + expected = Series(np.asarray([np.nan, 1], np.float64), name="A") + tm.assert_series_equal(result, expected) + + df = DataFrame({"A": [1.0, 2]}) + result = df["A"] + expected = Series(np.asarray([1.0, 2], np.float64), name="A") + tm.assert_series_equal(result, expected) + + df = DataFrame({"A": [1.0 + 2.0j, 3]}) + result = df["A"] + expected = Series(np.asarray([1.0 + 2.0j, 3], np.complex128), name="A") + tm.assert_series_equal(result, expected) + + df = DataFrame({"A": [1.0 + 2.0j, 3.0]}) + result = df["A"] + expected = Series(np.asarray([1.0 + 2.0j, 3.0], np.complex128), name="A") + tm.assert_series_equal(result, expected) + + df = DataFrame({"A": [1.0 + 2.0j, True]}) + result = df["A"] + expected = Series(np.asarray([1.0 + 2.0j, True], np.object_), name="A") + tm.assert_series_equal(result, expected) + + df = DataFrame({"A": [1.0, None]}) + result = df["A"] + expected = Series(np.asarray([1.0, np.nan], np.float64), name="A") + tm.assert_series_equal(result, expected) + + df = DataFrame({"A": [1.0 + 2.0j, None]}) + result = df["A"] + expected = Series(np.asarray([1.0 + 2.0j, np.nan], np.complex128), name="A") + tm.assert_series_equal(result, expected) + + df = DataFrame({"A": [2.0, 1, True, None]}) + result = df["A"] + expected = Series(np.asarray([2.0, 1, True, None], np.object_), name="A") + tm.assert_series_equal(result, expected) + + df = DataFrame({"A": [2.0, 1, datetime(2006, 1, 1), None]}) + result = df["A"] + expected = Series( + np.asarray([2.0, 1, datetime(2006, 1, 1), None], np.object_), name="A" + ) + tm.assert_series_equal(result, expected) + + def test_construction_with_mixed(self, float_string_frame, using_infer_string): + # mixed-type frames + float_string_frame["datetime"] = datetime.now() + float_string_frame["timedelta"] = timedelta(days=1, seconds=1) + assert float_string_frame["datetime"].dtype == "M8[us]" + assert float_string_frame["timedelta"].dtype == "m8[us]" + result = float_string_frame.dtypes + expected = Series( + [np.dtype("float64")] * 4 + + [ + np.dtype("object") + if not using_infer_string + else pd.StringDtype(na_value=np.nan), + np.dtype("datetime64[us]"), + np.dtype("timedelta64[us]"), + ], + index=list("ABCD") + ["foo", "datetime", "timedelta"], + ) + tm.assert_series_equal(result, expected) + + def test_construction_with_conversions(self): + # convert from a numpy array of non-ns timedelta64; as of 2.0 this does + # *not* convert + arr = np.array([1, 2, 3], dtype="timedelta64[s]") + df = DataFrame({"A": arr}) + expected = DataFrame( + {"A": pd.timedelta_range("00:00:01", periods=3, freq="s")}, index=range(3) + ) + tm.assert_numpy_array_equal(df["A"].to_numpy(), arr) + + expected = DataFrame( + { + "dt1": Timestamp("20130101"), + "dt2": date_range("20130101", periods=3).astype("M8[s]"), + # 'dt3' : date_range('20130101 00:00:01',periods=3,freq='s'), + # FIXME: don't leave commented-out + }, + index=range(3), + ) + assert expected.dtypes["dt1"] == "M8[s]" + assert expected.dtypes["dt2"] == "M8[s]" + + dt1 = np.datetime64("2013-01-01") + dt2 = np.array( + ["2013-01-01", "2013-01-02", "2013-01-03"], dtype="datetime64[D]" + ) + df = DataFrame({"dt1": dt1, "dt2": dt2}) + + # df['dt3'] = np.array(['2013-01-01 00:00:01','2013-01-01 + # 00:00:02','2013-01-01 00:00:03'],dtype='datetime64[s]') + # FIXME: don't leave commented-out + + tm.assert_frame_equal(df, expected) + + def test_constructor_compound_dtypes(self): + # GH 5191 + # compound dtypes should raise not-implementederror + + def f(dtype): + data = list(itertools.repeat((datetime(2001, 1, 1), "aa", 20), 9)) + return DataFrame(data=data, columns=["A", "B", "C"], dtype=dtype) + + msg = "compound dtypes are not implemented in the DataFrame constructor" + with pytest.raises(NotImplementedError, match=msg): + f([("A", "datetime64[h]"), ("B", "str"), ("C", "int32")]) + + # pre-2.0 these used to work (though results may be unexpected) + with pytest.raises(TypeError, match="argument must be"): + f("int64") + with pytest.raises(TypeError, match="argument must be"): + f("float64") + + # 10822 + msg = "^Unknown datetime string format, unable to parse: aa, at position 0$" + with pytest.raises(ValueError, match=msg): + f("M8[ns]") + + def test_pickle(self, float_string_frame, timezone_frame): + empty_frame = DataFrame() + + unpickled = tm.round_trip_pickle(float_string_frame) + tm.assert_frame_equal(float_string_frame, unpickled) + + # buglet + float_string_frame._mgr.ndim + + # empty + unpickled = tm.round_trip_pickle(empty_frame) + repr(unpickled) + + # tz frame + unpickled = tm.round_trip_pickle(timezone_frame) + tm.assert_frame_equal(timezone_frame, unpickled) + + def test_consolidate_datetime64(self): + # numpy vstack bug + + df = DataFrame( + { + "starting": pd.to_datetime( + [ + "2012-06-21 00:00", + "2012-06-23 07:00", + "2012-06-23 16:30", + "2012-06-25 08:00", + "2012-06-26 12:00", + ] + ), + "ending": pd.to_datetime( + [ + "2012-06-23 07:00", + "2012-06-23 16:30", + "2012-06-25 08:00", + "2012-06-26 12:00", + "2012-06-27 08:00", + ] + ), + "measure": [77, 65, 77, 0, 77], + } + ) + + ser_starting = df.starting + ser_starting.index = ser_starting.values + ser_starting = ser_starting.tz_localize("US/Eastern") + ser_starting = ser_starting.tz_convert("UTC") + ser_starting.index.name = "starting" + + ser_ending = df.ending + ser_ending.index = ser_ending.values + ser_ending = ser_ending.tz_localize("US/Eastern") + ser_ending = ser_ending.tz_convert("UTC") + ser_ending.index.name = "ending" + + df.starting = ser_starting.index + df.ending = ser_ending.index + + tm.assert_index_equal(pd.DatetimeIndex(df.starting), ser_starting.index) + tm.assert_index_equal(pd.DatetimeIndex(df.ending), ser_ending.index) + + def test_is_mixed_type(self, float_frame, float_string_frame): + assert not float_frame._is_mixed_type + assert float_string_frame._is_mixed_type + + def test_stale_cached_series_bug_473(self, using_copy_on_write, warn_copy_on_write): + # this is chained, but ok + with option_context("chained_assignment", None): + Y = DataFrame( + np.random.default_rng(2).random((4, 4)), + index=("a", "b", "c", "d"), + columns=("e", "f", "g", "h"), + ) + repr(Y) + Y["e"] = Y["e"].astype("object") + with tm.raises_chained_assignment_error(): + Y["g"]["c"] = np.nan + repr(Y) + Y.sum() + Y["g"].sum() + if using_copy_on_write: + assert not pd.isna(Y["g"]["c"]) + else: + assert pd.isna(Y["g"]["c"]) + + @pytest.mark.filterwarnings("ignore:Setting a value on a view:FutureWarning") + def test_strange_column_corruption_issue(self, using_copy_on_write): + # TODO(wesm): Unclear how exactly this is related to internal matters + df = DataFrame(index=[0, 1]) + df[0] = np.nan + wasCol = {} + + with tm.assert_produces_warning( + PerformanceWarning, raise_on_extra_warnings=False + ): + for i, dt in enumerate(df.index): + for col in range(100, 200): + if col not in wasCol: + wasCol[col] = 1 + df[col] = np.nan + if using_copy_on_write: + df.loc[dt, col] = i + else: + df[col][dt] = i + + myid = 100 + + first = len(df.loc[pd.isna(df[myid]), [myid]]) + second = len(df.loc[pd.isna(df[myid]), [myid]]) + assert first == second == 0 + + def test_constructor_no_pandas_array(self): + # Ensure that NumpyExtensionArray isn't allowed inside Series + # See https://github.com/pandas-dev/pandas/issues/23995 for more. + arr = Series([1, 2, 3]).array + result = DataFrame({"A": arr}) + expected = DataFrame({"A": [1, 2, 3]}) + tm.assert_frame_equal(result, expected) + assert isinstance(result._mgr.blocks[0], NumpyBlock) + assert result._mgr.blocks[0].is_numeric + + def test_add_column_with_pandas_array(self): + # GH 26390 + df = DataFrame({"a": [1, 2, 3, 4], "b": ["a", "b", "c", "d"]}) + df["c"] = pd.arrays.NumpyExtensionArray(np.array([1, 2, None, 3], dtype=object)) + df2 = DataFrame( + { + "a": [1, 2, 3, 4], + "b": ["a", "b", "c", "d"], + "c": pd.arrays.NumpyExtensionArray( + np.array([1, 2, None, 3], dtype=object) + ), + } + ) + assert type(df["c"]._mgr.blocks[0]) == NumpyBlock + assert df["c"]._mgr.blocks[0].is_object + assert type(df2["c"]._mgr.blocks[0]) == NumpyBlock + assert df2["c"]._mgr.blocks[0].is_object + tm.assert_frame_equal(df, df2) + + +def test_update_inplace_sets_valid_block_values(using_copy_on_write): + # https://github.com/pandas-dev/pandas/issues/33457 + df = DataFrame({"a": Series([1, 2, None], dtype="category")}) + + # inplace update of a single column + if using_copy_on_write: + with tm.raises_chained_assignment_error(): + df["a"].fillna(1, inplace=True) + else: + with tm.assert_produces_warning( + FutureWarning if not WARNING_CHECK_DISABLED else None, + match="inplace method", + ): + df["a"].fillna(1, inplace=True) + + # check we haven't put a Series into any block.values + assert isinstance(df._mgr.blocks[0].values, Categorical) + + if not using_copy_on_write: + # smoketest for OP bug from GH#35731 + assert df.isnull().sum().sum() == 0 + + +def test_nonconsolidated_item_cache_take(): + # https://github.com/pandas-dev/pandas/issues/35521 + + # create non-consolidated dataframe with object dtype columns + df = DataFrame( + { + "col1": Series(["a"], dtype=object), + } + ) + df["col2"] = Series([0], dtype=object) + assert not df._mgr.is_consolidated() + + # access column (item cache) + df["col1"] == "A" + # take operation + # (regression was that this consolidated but didn't reset item cache, + # resulting in an invalid cache and the .at operation not working properly) + df[df["col2"] == 0] + + # now setting value should update actual dataframe + df.at[0, "col1"] = "A" + + expected = DataFrame({"col1": ["A"], "col2": [0]}, dtype=object) + tm.assert_frame_equal(df, expected) + assert df.at[0, "col1"] == "A" diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_constructors.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_constructors.py new file mode 100644 index 0000000000000000000000000000000000000000..efc40536d56beb94b5a3f72f36267bd15cc72702 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_constructors.py @@ -0,0 +1,3387 @@ +import array +from collections import ( + OrderedDict, + abc, + defaultdict, + namedtuple, +) +from collections.abc import Iterator +from dataclasses import make_dataclass +from datetime import ( + date, + datetime, + timedelta, +) +import functools +import re + +import numpy as np +from numpy import ma +from numpy.ma import mrecords +import pytest +import pytz + +from pandas._libs import lib +from pandas.compat.numpy import np_version_gt2 +from pandas.errors import IntCastingNaNError +import pandas.util._test_decorators as td + +from pandas.core.dtypes.common import is_integer_dtype +from pandas.core.dtypes.dtypes import ( + DatetimeTZDtype, + IntervalDtype, + NumpyEADtype, + PeriodDtype, +) + +import pandas as pd +from pandas import ( + Categorical, + CategoricalIndex, + DataFrame, + DatetimeIndex, + Index, + Interval, + MultiIndex, + Period, + RangeIndex, + Series, + Timedelta, + Timestamp, + cut, + date_range, + isna, +) +import pandas._testing as tm +from pandas.arrays import ( + DatetimeArray, + IntervalArray, + PeriodArray, + SparseArray, + TimedeltaArray, +) + +MIXED_FLOAT_DTYPES = ["float16", "float32", "float64"] +MIXED_INT_DTYPES = [ + "uint8", + "uint16", + "uint32", + "uint64", + "int8", + "int16", + "int32", + "int64", +] + + +class TestDataFrameConstructors: + def test_constructor_from_ndarray_with_str_dtype(self): + # If we don't ravel/reshape around ensure_str_array, we end up + # with an array of strings each of which is e.g. "[0 1 2]" + arr = np.arange(12).reshape(4, 3) + df = DataFrame(arr, dtype=str) + expected = DataFrame(arr.astype(str), dtype="str") + tm.assert_frame_equal(df, expected) + + def test_constructor_from_2d_datetimearray(self, using_array_manager): + dti = date_range("2016-01-01", periods=6, tz="US/Pacific") + dta = dti._data.reshape(3, 2) + + df = DataFrame(dta) + expected = DataFrame({0: dta[:, 0], 1: dta[:, 1]}) + tm.assert_frame_equal(df, expected) + if not using_array_manager: + # GH#44724 big performance hit if we de-consolidate + assert len(df._mgr.blocks) == 1 + + def test_constructor_dict_with_tzaware_scalar(self): + # GH#42505 + dt = Timestamp("2019-11-03 01:00:00-0700").tz_convert("America/Los_Angeles") + dt = dt.as_unit("ns") + + df = DataFrame({"dt": dt}, index=[0]) + expected = DataFrame({"dt": [dt]}) + tm.assert_frame_equal(df, expected) + + # Non-homogeneous + df = DataFrame({"dt": dt, "value": [1]}) + expected = DataFrame({"dt": [dt], "value": [1]}) + tm.assert_frame_equal(df, expected) + + def test_construct_ndarray_with_nas_and_int_dtype(self): + # GH#26919 match Series by not casting np.nan to meaningless int + arr = np.array([[1, np.nan], [2, 3]]) + msg = r"Cannot convert non-finite values \(NA or inf\) to integer" + with pytest.raises(IntCastingNaNError, match=msg): + DataFrame(arr, dtype="i8") + + # check this matches Series behavior + with pytest.raises(IntCastingNaNError, match=msg): + Series(arr[0], dtype="i8", name=0) + + def test_construct_from_list_of_datetimes(self): + df = DataFrame([datetime.now(), datetime.now()]) + assert df[0].dtype == np.dtype("M8[ns]") + + def test_constructor_from_tzaware_datetimeindex(self): + # don't cast a DatetimeIndex WITH a tz, leave as object + # GH#6032 + naive = DatetimeIndex(["2013-1-1 13:00", "2013-1-2 14:00"], name="B") + idx = naive.tz_localize("US/Pacific") + + expected = Series(np.array(idx.tolist(), dtype="object"), name="B") + assert expected.dtype == idx.dtype + + # convert index to series + result = Series(idx) + tm.assert_series_equal(result, expected) + + def test_columns_with_leading_underscore_work_with_to_dict(self): + col_underscore = "_b" + df = DataFrame({"a": [1, 2], col_underscore: [3, 4]}) + d = df.to_dict(orient="records") + + ref_d = [{"a": 1, col_underscore: 3}, {"a": 2, col_underscore: 4}] + + assert ref_d == d + + def test_columns_with_leading_number_and_underscore_work_with_to_dict(self): + col_with_num = "1_b" + df = DataFrame({"a": [1, 2], col_with_num: [3, 4]}) + d = df.to_dict(orient="records") + + ref_d = [{"a": 1, col_with_num: 3}, {"a": 2, col_with_num: 4}] + + assert ref_d == d + + def test_array_of_dt64_nat_with_td64dtype_raises(self, frame_or_series): + # GH#39462 + nat = np.datetime64("NaT", "ns") + arr = np.array([nat], dtype=object) + if frame_or_series is DataFrame: + arr = arr.reshape(1, 1) + + msg = "Invalid type for timedelta scalar: " + with pytest.raises(TypeError, match=msg): + frame_or_series(arr, dtype="m8[ns]") + + @pytest.mark.parametrize("kind", ["m", "M"]) + def test_datetimelike_values_with_object_dtype(self, kind, frame_or_series): + # with dtype=object, we should cast dt64 values to Timestamps, not pydatetimes + if kind == "M": + dtype = "M8[ns]" + scalar_type = Timestamp + else: + dtype = "m8[ns]" + scalar_type = Timedelta + + arr = np.arange(6, dtype="i8").view(dtype).reshape(3, 2) + if frame_or_series is Series: + arr = arr[:, 0] + + obj = frame_or_series(arr, dtype=object) + assert obj._mgr.arrays[0].dtype == object + assert isinstance(obj._mgr.arrays[0].ravel()[0], scalar_type) + + # go through a different path in internals.construction + obj = frame_or_series(frame_or_series(arr), dtype=object) + assert obj._mgr.arrays[0].dtype == object + assert isinstance(obj._mgr.arrays[0].ravel()[0], scalar_type) + + obj = frame_or_series(frame_or_series(arr), dtype=NumpyEADtype(object)) + assert obj._mgr.arrays[0].dtype == object + assert isinstance(obj._mgr.arrays[0].ravel()[0], scalar_type) + + if frame_or_series is DataFrame: + # other paths through internals.construction + sers = [Series(x) for x in arr] + obj = frame_or_series(sers, dtype=object) + assert obj._mgr.arrays[0].dtype == object + assert isinstance(obj._mgr.arrays[0].ravel()[0], scalar_type) + + def test_series_with_name_not_matching_column(self): + # GH#9232 + x = Series(range(5), name=1) + y = Series(range(5), name=0) + + result = DataFrame(x, columns=[0]) + expected = DataFrame([], columns=[0]) + tm.assert_frame_equal(result, expected) + + result = DataFrame(y, columns=[1]) + expected = DataFrame([], columns=[1]) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "constructor", + [ + lambda: DataFrame(), + lambda: DataFrame(None), + lambda: DataFrame(()), + lambda: DataFrame([]), + lambda: DataFrame(_ for _ in []), + lambda: DataFrame(range(0)), + lambda: DataFrame(data=None), + lambda: DataFrame(data=()), + lambda: DataFrame(data=[]), + lambda: DataFrame(data=(_ for _ in [])), + lambda: DataFrame(data=range(0)), + ], + ) + def test_empty_constructor(self, constructor): + expected = DataFrame() + result = constructor() + assert len(result.index) == 0 + assert len(result.columns) == 0 + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "constructor", + [ + lambda: DataFrame({}), + lambda: DataFrame(data={}), + ], + ) + def test_empty_constructor_object_index(self, constructor): + expected = DataFrame(index=RangeIndex(0), columns=RangeIndex(0)) + result = constructor() + assert len(result.index) == 0 + assert len(result.columns) == 0 + tm.assert_frame_equal(result, expected, check_index_type=True) + + @pytest.mark.parametrize( + "emptylike,expected_index,expected_columns", + [ + ([[]], RangeIndex(1), RangeIndex(0)), + ([[], []], RangeIndex(2), RangeIndex(0)), + ([(_ for _ in [])], RangeIndex(1), RangeIndex(0)), + ], + ) + def test_emptylike_constructor(self, emptylike, expected_index, expected_columns): + expected = DataFrame(index=expected_index, columns=expected_columns) + result = DataFrame(emptylike) + tm.assert_frame_equal(result, expected) + + def test_constructor_mixed(self, float_string_frame, using_infer_string): + dtype = "str" if using_infer_string else np.object_ + assert float_string_frame["foo"].dtype == dtype + + def test_constructor_cast_failure(self): + # as of 2.0, we raise if we can't respect "dtype", previously we + # silently ignored + msg = "could not convert string to float" + with pytest.raises(ValueError, match=msg): + DataFrame({"a": ["a", "b", "c"]}, dtype=np.float64) + + # GH 3010, constructing with odd arrays + df = DataFrame(np.ones((4, 2))) + + # this is ok + df["foo"] = np.ones((4, 2)).tolist() + + # this is not ok + msg = "Expected a 1D array, got an array with shape \\(4, 2\\)" + with pytest.raises(ValueError, match=msg): + df["test"] = np.ones((4, 2)) + + # this is ok + df["foo2"] = np.ones((4, 2)).tolist() + + def test_constructor_dtype_copy(self): + orig_df = DataFrame({"col1": [1.0], "col2": [2.0], "col3": [3.0]}) + + new_df = DataFrame(orig_df, dtype=float, copy=True) + + new_df["col1"] = 200.0 + assert orig_df["col1"][0] == 1.0 + + def test_constructor_dtype_nocast_view_dataframe( + self, using_copy_on_write, warn_copy_on_write + ): + df = DataFrame([[1, 2]]) + should_be_view = DataFrame(df, dtype=df[0].dtype) + if using_copy_on_write: + should_be_view.iloc[0, 0] = 99 + assert df.values[0, 0] == 1 + else: + with tm.assert_cow_warning(warn_copy_on_write): + should_be_view.iloc[0, 0] = 99 + assert df.values[0, 0] == 99 + + def test_constructor_dtype_nocast_view_2d_array( + self, using_array_manager, using_copy_on_write, warn_copy_on_write + ): + df = DataFrame([[1, 2], [3, 4]], dtype="int64") + if not using_array_manager and not using_copy_on_write: + should_be_view = DataFrame(df.values, dtype=df[0].dtype) + # TODO(CoW-warn) this should warn + # with tm.assert_cow_warning(warn_copy_on_write): + should_be_view.iloc[0, 0] = 97 + assert df.values[0, 0] == 97 + else: + # INFO(ArrayManager) DataFrame(ndarray) doesn't necessarily preserve + # a view on the array to ensure contiguous 1D arrays + df2 = DataFrame(df.values, dtype=df[0].dtype) + assert df2._mgr.arrays[0].flags.c_contiguous + + @td.skip_array_manager_invalid_test + def test_1d_object_array_does_not_copy(self, using_infer_string): + # https://github.com/pandas-dev/pandas/issues/39272 + arr = np.array(["a", "b"], dtype="object") + df = DataFrame(arr, copy=False) + if using_infer_string: + if df[0].dtype.storage == "pyarrow": + # object dtype strings are converted to arrow memory, + # no numpy arrays to compare + pass + else: + assert np.shares_memory(df[0].to_numpy(), arr) + else: + assert np.shares_memory(df.values, arr) + + df = DataFrame(arr, dtype=object, copy=False) + assert np.shares_memory(df.values, arr) + + @td.skip_array_manager_invalid_test + def test_2d_object_array_does_not_copy(self, using_infer_string): + # https://github.com/pandas-dev/pandas/issues/39272 + arr = np.array([["a", "b"], ["c", "d"]], dtype="object") + df = DataFrame(arr, copy=False) + if using_infer_string: + if df[0].dtype.storage == "pyarrow": + # object dtype strings are converted to arrow memory, + # no numpy arrays to compare + pass + else: + assert np.shares_memory(df[0].to_numpy(), arr) + else: + assert np.shares_memory(df.values, arr) + + df = DataFrame(arr, dtype=object, copy=False) + assert np.shares_memory(df.values, arr) + + def test_constructor_dtype_list_data(self): + df = DataFrame([[1, "2"], [None, "a"]], dtype=object) + assert df.loc[1, 0] is None + assert df.loc[0, 1] == "2" + + def test_constructor_list_of_2d_raises(self): + # https://github.com/pandas-dev/pandas/issues/32289 + a = DataFrame() + b = np.empty((0, 0)) + with pytest.raises(ValueError, match=r"shape=\(1, 0, 0\)"): + DataFrame([a]) + + with pytest.raises(ValueError, match=r"shape=\(1, 0, 0\)"): + DataFrame([b]) + + a = DataFrame({"A": [1, 2]}) + with pytest.raises(ValueError, match=r"shape=\(2, 2, 1\)"): + DataFrame([a, a]) + + @pytest.mark.parametrize( + "typ, ad", + [ + # mixed floating and integer coexist in the same frame + ["float", {}], + # add lots of types + ["float", {"A": 1, "B": "foo", "C": "bar"}], + # GH 622 + ["int", {}], + ], + ) + def test_constructor_mixed_dtypes(self, typ, ad): + if typ == "int": + dtypes = MIXED_INT_DTYPES + arrays = [ + np.array(np.random.default_rng(2).random(10), dtype=d) for d in dtypes + ] + elif typ == "float": + dtypes = MIXED_FLOAT_DTYPES + arrays = [ + np.array(np.random.default_rng(2).integers(10, size=10), dtype=d) + for d in dtypes + ] + + for d, a in zip(dtypes, arrays): + assert a.dtype == d + ad.update(dict(zip(dtypes, arrays))) + df = DataFrame(ad) + + dtypes = MIXED_FLOAT_DTYPES + MIXED_INT_DTYPES + for d in dtypes: + if d in df: + assert df.dtypes[d] == d + + def test_constructor_complex_dtypes(self): + # GH10952 + a = np.random.default_rng(2).random(10).astype(np.complex64) + b = np.random.default_rng(2).random(10).astype(np.complex128) + + df = DataFrame({"a": a, "b": b}) + assert a.dtype == df.a.dtype + assert b.dtype == df.b.dtype + + def test_constructor_dtype_str_na_values(self, string_dtype): + # https://github.com/pandas-dev/pandas/issues/21083 + df = DataFrame({"A": ["x", None]}, dtype=string_dtype) + result = df.isna() + expected = DataFrame({"A": [False, True]}) + tm.assert_frame_equal(result, expected) + assert df.iloc[1, 0] is None + + df = DataFrame({"A": ["x", np.nan]}, dtype=string_dtype) + assert np.isnan(df.iloc[1, 0]) + + def test_constructor_rec(self, float_frame): + rec = float_frame.to_records(index=False) + rec.dtype.names = list(rec.dtype.names)[::-1] + + index = float_frame.index + + df = DataFrame(rec) + tm.assert_index_equal(df.columns, Index(rec.dtype.names)) + + df2 = DataFrame(rec, index=index) + tm.assert_index_equal(df2.columns, Index(rec.dtype.names)) + tm.assert_index_equal(df2.index, index) + + # case with columns != the ones we would infer from the data + rng = np.arange(len(rec))[::-1] + df3 = DataFrame(rec, index=rng, columns=["C", "B"]) + expected = DataFrame(rec, index=rng).reindex(columns=["C", "B"]) + tm.assert_frame_equal(df3, expected) + + def test_constructor_bool(self): + df = DataFrame({0: np.ones(10, dtype=bool), 1: np.zeros(10, dtype=bool)}) + assert df.values.dtype == np.bool_ + + def test_constructor_overflow_int64(self): + # see gh-14881 + values = np.array([2**64 - i for i in range(1, 10)], dtype=np.uint64) + + result = DataFrame({"a": values}) + assert result["a"].dtype == np.uint64 + + # see gh-2355 + data_scores = [ + (6311132704823138710, 273), + (2685045978526272070, 23), + (8921811264899370420, 45), + (17019687244989530680, 270), + (9930107427299601010, 273), + ] + dtype = [("uid", "u8"), ("score", "u8")] + data = np.zeros((len(data_scores),), dtype=dtype) + data[:] = data_scores + df_crawls = DataFrame(data) + assert df_crawls["uid"].dtype == np.uint64 + + @pytest.mark.parametrize( + "values", + [ + np.array([2**64], dtype=object), + np.array([2**65]), + [2**64 + 1], + np.array([-(2**63) - 4], dtype=object), + np.array([-(2**64) - 1]), + [-(2**65) - 2], + ], + ) + def test_constructor_int_overflow(self, values): + # see gh-18584 + value = values[0] + result = DataFrame(values) + + assert result[0].dtype == object + assert result[0][0] == value + + @pytest.mark.parametrize( + "values", + [ + np.array([1], dtype=np.uint16), + np.array([1], dtype=np.uint32), + np.array([1], dtype=np.uint64), + [np.uint16(1)], + [np.uint32(1)], + [np.uint64(1)], + ], + ) + def test_constructor_numpy_uints(self, values): + # GH#47294 + value = values[0] + result = DataFrame(values) + + assert result[0].dtype == value.dtype + assert result[0][0] == value + + def test_constructor_ordereddict(self): + nitems = 100 + nums = list(range(nitems)) + np.random.default_rng(2).shuffle(nums) + expected = [f"A{i:d}" for i in nums] + df = DataFrame(OrderedDict(zip(expected, [[0]] * nitems))) + assert expected == list(df.columns) + + def test_constructor_dict(self): + datetime_series = Series( + np.arange(30, dtype=np.float64), index=date_range("2020-01-01", periods=30) + ) + # test expects index shifted by 5 + datetime_series_short = datetime_series[5:] + + frame = DataFrame({"col1": datetime_series, "col2": datetime_series_short}) + + # col2 is padded with NaN + assert len(datetime_series) == 30 + assert len(datetime_series_short) == 25 + + tm.assert_series_equal(frame["col1"], datetime_series.rename("col1")) + + exp = Series( + np.concatenate([[np.nan] * 5, datetime_series_short.values]), + index=datetime_series.index, + name="col2", + ) + tm.assert_series_equal(exp, frame["col2"]) + + frame = DataFrame( + {"col1": datetime_series, "col2": datetime_series_short}, + columns=["col2", "col3", "col4"], + ) + + assert len(frame) == len(datetime_series_short) + assert "col1" not in frame + assert isna(frame["col3"]).all() + + # Corner cases + assert len(DataFrame()) == 0 + + # mix dict and array, wrong size - no spec for which error should raise + # first + msg = "Mixing dicts with non-Series may lead to ambiguous ordering." + with pytest.raises(ValueError, match=msg): + DataFrame({"A": {"a": "a", "b": "b"}, "B": ["a", "b", "c"]}) + + def test_constructor_dict_length1(self): + # Length-one dict micro-optimization + frame = DataFrame({"A": {"1": 1, "2": 2}}) + tm.assert_index_equal(frame.index, Index(["1", "2"])) + + def test_constructor_dict_with_index(self): + # empty dict plus index + idx = Index([0, 1, 2]) + frame = DataFrame({}, index=idx) + assert frame.index is idx + + def test_constructor_dict_with_index_and_columns(self): + # empty dict with index and columns + idx = Index([0, 1, 2]) + frame = DataFrame({}, index=idx, columns=idx) + assert frame.index is idx + assert frame.columns is idx + assert len(frame._series) == 3 + + def test_constructor_dict_of_empty_lists(self): + # with dict of empty list and Series + frame = DataFrame({"A": [], "B": []}, columns=["A", "B"]) + tm.assert_index_equal(frame.index, RangeIndex(0), exact=True) + + def test_constructor_dict_with_none(self): + # GH 14381 + # Dict with None value + frame_none = DataFrame({"a": None}, index=[0]) + frame_none_list = DataFrame({"a": [None]}, index=[0]) + assert frame_none._get_value(0, "a") is None + assert frame_none_list._get_value(0, "a") is None + tm.assert_frame_equal(frame_none, frame_none_list) + + def test_constructor_dict_errors(self): + # GH10856 + # dict with scalar values should raise error, even if columns passed + msg = "If using all scalar values, you must pass an index" + with pytest.raises(ValueError, match=msg): + DataFrame({"a": 0.7}) + + with pytest.raises(ValueError, match=msg): + DataFrame({"a": 0.7}, columns=["a"]) + + @pytest.mark.parametrize("scalar", [2, np.nan, None, "D"]) + def test_constructor_invalid_items_unused(self, scalar): + # No error if invalid (scalar) value is in fact not used: + result = DataFrame({"a": scalar}, columns=["b"]) + expected = DataFrame(columns=["b"]) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("value", [2, np.nan, None, float("nan")]) + def test_constructor_dict_nan_key(self, value): + # GH 18455 + cols = [1, value, 3] + idx = ["a", value] + values = [[0, 3], [1, 4], [2, 5]] + data = {cols[c]: Series(values[c], index=idx) for c in range(3)} + result = DataFrame(data).sort_values(1).sort_values("a", axis=1) + expected = DataFrame( + np.arange(6, dtype="int64").reshape(2, 3), index=idx, columns=cols + ) + tm.assert_frame_equal(result, expected) + + result = DataFrame(data, index=idx).sort_values("a", axis=1) + tm.assert_frame_equal(result, expected) + + result = DataFrame(data, index=idx, columns=cols) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("value", [np.nan, None, float("nan")]) + def test_constructor_dict_nan_tuple_key(self, value): + # GH 18455 + cols = Index([(11, 21), (value, 22), (13, value)]) + idx = Index([("a", value), (value, 2)]) + values = [[0, 3], [1, 4], [2, 5]] + data = {cols[c]: Series(values[c], index=idx) for c in range(3)} + result = DataFrame(data).sort_values((11, 21)).sort_values(("a", value), axis=1) + expected = DataFrame( + np.arange(6, dtype="int64").reshape(2, 3), index=idx, columns=cols + ) + tm.assert_frame_equal(result, expected) + + result = DataFrame(data, index=idx).sort_values(("a", value), axis=1) + tm.assert_frame_equal(result, expected) + + result = DataFrame(data, index=idx, columns=cols) + tm.assert_frame_equal(result, expected) + + def test_constructor_dict_order_insertion(self): + datetime_series = Series( + np.arange(10, dtype=np.float64), index=date_range("2020-01-01", periods=10) + ) + datetime_series_short = datetime_series[:5] + + # GH19018 + # initialization ordering: by insertion order if python>= 3.6 + d = {"b": datetime_series_short, "a": datetime_series} + frame = DataFrame(data=d) + expected = DataFrame(data=d, columns=list("ba")) + tm.assert_frame_equal(frame, expected) + + def test_constructor_dict_nan_key_and_columns(self): + # GH 16894 + result = DataFrame({np.nan: [1, 2], 2: [2, 3]}, columns=[np.nan, 2]) + expected = DataFrame([[1, 2], [2, 3]], columns=[np.nan, 2]) + tm.assert_frame_equal(result, expected) + + def test_constructor_multi_index(self): + # GH 4078 + # construction error with mi and all-nan frame + tuples = [(2, 3), (3, 3), (3, 3)] + mi = MultiIndex.from_tuples(tuples) + df = DataFrame(index=mi, columns=mi) + assert isna(df).values.ravel().all() + + tuples = [(3, 3), (2, 3), (3, 3)] + mi = MultiIndex.from_tuples(tuples) + df = DataFrame(index=mi, columns=mi) + assert isna(df).values.ravel().all() + + def test_constructor_2d_index(self): + # GH 25416 + # handling of 2d index in construction + df = DataFrame([[1]], columns=[[1]], index=[1, 2]) + expected = DataFrame( + [1, 1], + index=Index([1, 2], dtype="int64"), + columns=MultiIndex(levels=[[1]], codes=[[0]]), + ) + tm.assert_frame_equal(df, expected) + + df = DataFrame([[1]], columns=[[1]], index=[[1, 2]]) + expected = DataFrame( + [1, 1], + index=MultiIndex(levels=[[1, 2]], codes=[[0, 1]]), + columns=MultiIndex(levels=[[1]], codes=[[0]]), + ) + tm.assert_frame_equal(df, expected) + + def test_constructor_error_msgs(self): + msg = "Empty data passed with indices specified." + # passing an empty array with columns specified. + with pytest.raises(ValueError, match=msg): + DataFrame(np.empty(0), index=[1]) + + msg = "Mixing dicts with non-Series may lead to ambiguous ordering." + # mix dict and array, wrong size + with pytest.raises(ValueError, match=msg): + DataFrame({"A": {"a": "a", "b": "b"}, "B": ["a", "b", "c"]}) + + # wrong size ndarray, GH 3105 + msg = r"Shape of passed values is \(4, 3\), indices imply \(3, 3\)" + with pytest.raises(ValueError, match=msg): + DataFrame( + np.arange(12).reshape((4, 3)), + columns=["foo", "bar", "baz"], + index=date_range("2000-01-01", periods=3), + ) + + arr = np.array([[4, 5, 6]]) + msg = r"Shape of passed values is \(1, 3\), indices imply \(1, 4\)" + with pytest.raises(ValueError, match=msg): + DataFrame(index=[0], columns=range(4), data=arr) + + arr = np.array([4, 5, 6]) + msg = r"Shape of passed values is \(3, 1\), indices imply \(1, 4\)" + with pytest.raises(ValueError, match=msg): + DataFrame(index=[0], columns=range(4), data=arr) + + # higher dim raise exception + with pytest.raises(ValueError, match="Must pass 2-d input"): + DataFrame(np.zeros((3, 3, 3)), columns=["A", "B", "C"], index=[1]) + + # wrong size axis labels + msg = r"Shape of passed values is \(2, 3\), indices imply \(1, 3\)" + with pytest.raises(ValueError, match=msg): + DataFrame( + np.random.default_rng(2).random((2, 3)), + columns=["A", "B", "C"], + index=[1], + ) + + msg = r"Shape of passed values is \(2, 3\), indices imply \(2, 2\)" + with pytest.raises(ValueError, match=msg): + DataFrame( + np.random.default_rng(2).random((2, 3)), + columns=["A", "B"], + index=[1, 2], + ) + + # gh-26429 + msg = "2 columns passed, passed data had 10 columns" + with pytest.raises(ValueError, match=msg): + DataFrame((range(10), range(10, 20)), columns=("ones", "twos")) + + msg = "If using all scalar values, you must pass an index" + with pytest.raises(ValueError, match=msg): + DataFrame({"a": False, "b": True}) + + def test_constructor_subclass_dict(self, dict_subclass): + # Test for passing dict subclass to constructor + data = { + "col1": dict_subclass((x, 10.0 * x) for x in range(10)), + "col2": dict_subclass((x, 20.0 * x) for x in range(10)), + } + df = DataFrame(data) + refdf = DataFrame({col: dict(val.items()) for col, val in data.items()}) + tm.assert_frame_equal(refdf, df) + + data = dict_subclass(data.items()) + df = DataFrame(data) + tm.assert_frame_equal(refdf, df) + + def test_constructor_defaultdict(self, float_frame): + # try with defaultdict + data = {} + float_frame.loc[: float_frame.index[10], "B"] = np.nan + + for k, v in float_frame.items(): + dct = defaultdict(dict) + dct.update(v.to_dict()) + data[k] = dct + frame = DataFrame(data) + expected = frame.reindex(index=float_frame.index) + tm.assert_frame_equal(float_frame, expected) + + def test_constructor_dict_block(self): + expected = np.array([[4.0, 3.0, 2.0, 1.0]]) + df = DataFrame( + {"d": [4.0], "c": [3.0], "b": [2.0], "a": [1.0]}, + columns=["d", "c", "b", "a"], + ) + tm.assert_numpy_array_equal(df.values, expected) + + def test_constructor_dict_cast(self, using_infer_string): + # cast float tests + test_data = {"A": {"1": 1, "2": 2}, "B": {"1": "1", "2": "2", "3": "3"}} + frame = DataFrame(test_data, dtype=float) + assert len(frame) == 3 + assert frame["B"].dtype == np.float64 + assert frame["A"].dtype == np.float64 + + frame = DataFrame(test_data) + assert len(frame) == 3 + assert frame["B"].dtype == np.object_ if not using_infer_string else "str" + assert frame["A"].dtype == np.float64 + + def test_constructor_dict_cast2(self): + # can't cast to float + test_data = { + "A": dict(zip(range(20), [f"word_{i}" for i in range(20)])), + "B": dict(zip(range(15), np.random.default_rng(2).standard_normal(15))), + } + with pytest.raises(ValueError, match="could not convert string"): + DataFrame(test_data, dtype=float) + + def test_constructor_dict_dont_upcast(self): + d = {"Col1": {"Row1": "A String", "Row2": np.nan}} + df = DataFrame(d) + assert isinstance(df["Col1"]["Row2"], float) + + def test_constructor_dict_dont_upcast2(self): + dm = DataFrame([[1, 2], ["a", "b"]], index=[1, 2], columns=[1, 2]) + assert isinstance(dm[1][1], int) + + def test_constructor_dict_of_tuples(self): + # GH #1491 + data = {"a": (1, 2, 3), "b": (4, 5, 6)} + + result = DataFrame(data) + expected = DataFrame({k: list(v) for k, v in data.items()}) + tm.assert_frame_equal(result, expected, check_dtype=False) + + def test_constructor_dict_of_ranges(self): + # GH 26356 + data = {"a": range(3), "b": range(3, 6)} + + result = DataFrame(data) + expected = DataFrame({"a": [0, 1, 2], "b": [3, 4, 5]}) + tm.assert_frame_equal(result, expected) + + def test_constructor_dict_of_iterators(self): + # GH 26349 + data = {"a": iter(range(3)), "b": reversed(range(3))} + + result = DataFrame(data) + expected = DataFrame({"a": [0, 1, 2], "b": [2, 1, 0]}) + tm.assert_frame_equal(result, expected) + + def test_constructor_dict_of_generators(self): + # GH 26349 + data = {"a": (i for i in (range(3))), "b": (i for i in reversed(range(3)))} + result = DataFrame(data) + expected = DataFrame({"a": [0, 1, 2], "b": [2, 1, 0]}) + tm.assert_frame_equal(result, expected) + + def test_constructor_dict_multiindex(self): + d = { + ("a", "a"): {("i", "i"): 0, ("i", "j"): 1, ("j", "i"): 2}, + ("b", "a"): {("i", "i"): 6, ("i", "j"): 5, ("j", "i"): 4}, + ("b", "c"): {("i", "i"): 7, ("i", "j"): 8, ("j", "i"): 9}, + } + _d = sorted(d.items()) + df = DataFrame(d) + expected = DataFrame( + [x[1] for x in _d], index=MultiIndex.from_tuples([x[0] for x in _d]) + ).T + expected.index = MultiIndex.from_tuples(expected.index) + tm.assert_frame_equal( + df, + expected, + ) + + d["z"] = {"y": 123.0, ("i", "i"): 111, ("i", "j"): 111, ("j", "i"): 111} + _d.insert(0, ("z", d["z"])) + expected = DataFrame( + [x[1] for x in _d], index=Index([x[0] for x in _d], tupleize_cols=False) + ).T + expected.index = Index(expected.index, tupleize_cols=False) + df = DataFrame(d) + df = df.reindex(columns=expected.columns, index=expected.index) + tm.assert_frame_equal(df, expected) + + def test_constructor_dict_datetime64_index(self): + # GH 10160 + dates_as_str = ["1984-02-19", "1988-11-06", "1989-12-03", "1990-03-15"] + + def create_data(constructor): + return {i: {constructor(s): 2 * i} for i, s in enumerate(dates_as_str)} + + data_datetime64 = create_data(np.datetime64) + data_datetime = create_data(lambda x: datetime.strptime(x, "%Y-%m-%d")) + data_Timestamp = create_data(Timestamp) + + expected = DataFrame( + [ + {0: 0, 1: None, 2: None, 3: None}, + {0: None, 1: 2, 2: None, 3: None}, + {0: None, 1: None, 2: 4, 3: None}, + {0: None, 1: None, 2: None, 3: 6}, + ], + index=[Timestamp(dt) for dt in dates_as_str], + ) + + result_datetime64 = DataFrame(data_datetime64) + result_datetime = DataFrame(data_datetime) + result_Timestamp = DataFrame(data_Timestamp) + tm.assert_frame_equal(result_datetime64, expected) + tm.assert_frame_equal(result_datetime, expected) + tm.assert_frame_equal(result_Timestamp, expected) + + @pytest.mark.parametrize( + "klass,name", + [ + (lambda x: np.timedelta64(x, "D"), "timedelta64"), + (lambda x: timedelta(days=x), "pytimedelta"), + (lambda x: Timedelta(x, "D"), "Timedelta[ns]"), + (lambda x: Timedelta(x, "D").as_unit("s"), "Timedelta[s]"), + ], + ) + def test_constructor_dict_timedelta64_index(self, klass, name): + # GH 10160 + td_as_int = [1, 2, 3, 4] + + data = {i: {klass(s): 2 * i} for i, s in enumerate(td_as_int)} + + expected = DataFrame( + [ + {0: 0, 1: None, 2: None, 3: None}, + {0: None, 1: 2, 2: None, 3: None}, + {0: None, 1: None, 2: 4, 3: None}, + {0: None, 1: None, 2: None, 3: 6}, + ], + index=[Timedelta(td, "D") for td in td_as_int], + ) + + result = DataFrame(data) + + tm.assert_frame_equal(result, expected) + + def test_constructor_period_dict(self): + # PeriodIndex + a = pd.PeriodIndex(["2012-01", "NaT", "2012-04"], freq="M") + b = pd.PeriodIndex(["2012-02-01", "2012-03-01", "NaT"], freq="D") + df = DataFrame({"a": a, "b": b}) + assert df["a"].dtype == a.dtype + assert df["b"].dtype == b.dtype + + # list of periods + df = DataFrame({"a": a.astype(object).tolist(), "b": b.astype(object).tolist()}) + assert df["a"].dtype == a.dtype + assert df["b"].dtype == b.dtype + + def test_constructor_dict_extension_scalar(self, ea_scalar_and_dtype): + ea_scalar, ea_dtype = ea_scalar_and_dtype + df = DataFrame({"a": ea_scalar}, index=[0]) + assert df["a"].dtype == ea_dtype + + expected = DataFrame(index=[0], columns=["a"], data=ea_scalar) + + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize( + "data,dtype", + [ + (Period("2020-01"), PeriodDtype("M")), + (Interval(left=0, right=5), IntervalDtype("int64", "right")), + ( + Timestamp("2011-01-01", tz="US/Eastern"), + DatetimeTZDtype(unit="s", tz="US/Eastern"), + ), + ], + ) + def test_constructor_extension_scalar_data(self, data, dtype): + # GH 34832 + df = DataFrame(index=[0, 1], columns=["a", "b"], data=data) + + assert df["a"].dtype == dtype + assert df["b"].dtype == dtype + + arr = pd.array([data] * 2, dtype=dtype) + expected = DataFrame({"a": arr, "b": arr}) + + tm.assert_frame_equal(df, expected) + + def test_nested_dict_frame_constructor(self): + rng = pd.period_range("1/1/2000", periods=5) + df = DataFrame(np.random.default_rng(2).standard_normal((10, 5)), columns=rng) + + data = {} + for col in df.columns: + for row in df.index: + data.setdefault(col, {})[row] = df._get_value(row, col) + + result = DataFrame(data, columns=rng) + tm.assert_frame_equal(result, df) + + data = {} + for col in df.columns: + for row in df.index: + data.setdefault(row, {})[col] = df._get_value(row, col) + + result = DataFrame(data, index=rng).T + tm.assert_frame_equal(result, df) + + def _check_basic_constructor(self, empty): + # mat: 2d matrix with shape (3, 2) to input. empty - makes sized + # objects + mat = empty((2, 3), dtype=float) + # 2-D input + frame = DataFrame(mat, columns=["A", "B", "C"], index=[1, 2]) + + assert len(frame.index) == 2 + assert len(frame.columns) == 3 + + # 1-D input + frame = DataFrame(empty((3,)), columns=["A"], index=[1, 2, 3]) + assert len(frame.index) == 3 + assert len(frame.columns) == 1 + + if empty is not np.ones: + msg = r"Cannot convert non-finite values \(NA or inf\) to integer" + with pytest.raises(IntCastingNaNError, match=msg): + DataFrame(mat, columns=["A", "B", "C"], index=[1, 2], dtype=np.int64) + return + else: + frame = DataFrame( + mat, columns=["A", "B", "C"], index=[1, 2], dtype=np.int64 + ) + assert frame.values.dtype == np.int64 + + # wrong size axis labels + msg = r"Shape of passed values is \(2, 3\), indices imply \(1, 3\)" + with pytest.raises(ValueError, match=msg): + DataFrame(mat, columns=["A", "B", "C"], index=[1]) + msg = r"Shape of passed values is \(2, 3\), indices imply \(2, 2\)" + with pytest.raises(ValueError, match=msg): + DataFrame(mat, columns=["A", "B"], index=[1, 2]) + + # higher dim raise exception + with pytest.raises(ValueError, match="Must pass 2-d input"): + DataFrame(empty((3, 3, 3)), columns=["A", "B", "C"], index=[1]) + + # automatic labeling + frame = DataFrame(mat) + tm.assert_index_equal(frame.index, Index(range(2)), exact=True) + tm.assert_index_equal(frame.columns, Index(range(3)), exact=True) + + frame = DataFrame(mat, index=[1, 2]) + tm.assert_index_equal(frame.columns, Index(range(3)), exact=True) + + frame = DataFrame(mat, columns=["A", "B", "C"]) + tm.assert_index_equal(frame.index, Index(range(2)), exact=True) + + # 0-length axis + frame = DataFrame(empty((0, 3))) + assert len(frame.index) == 0 + + frame = DataFrame(empty((3, 0))) + assert len(frame.columns) == 0 + + def test_constructor_ndarray(self): + self._check_basic_constructor(np.ones) + + frame = DataFrame(["foo", "bar"], index=[0, 1], columns=["A"]) + assert len(frame) == 2 + + def test_constructor_maskedarray(self): + self._check_basic_constructor(ma.masked_all) + + # Check non-masked values + mat = ma.masked_all((2, 3), dtype=float) + mat[0, 0] = 1.0 + mat[1, 2] = 2.0 + frame = DataFrame(mat, columns=["A", "B", "C"], index=[1, 2]) + assert 1.0 == frame["A"][1] + assert 2.0 == frame["C"][2] + + # what is this even checking?? + mat = ma.masked_all((2, 3), dtype=float) + frame = DataFrame(mat, columns=["A", "B", "C"], index=[1, 2]) + assert np.all(~np.asarray(frame == frame)) + + @pytest.mark.filterwarnings( + "ignore:elementwise comparison failed:DeprecationWarning" + ) + def test_constructor_maskedarray_nonfloat(self): + # masked int promoted to float + mat = ma.masked_all((2, 3), dtype=int) + # 2-D input + frame = DataFrame(mat, columns=["A", "B", "C"], index=[1, 2]) + + assert len(frame.index) == 2 + assert len(frame.columns) == 3 + assert np.all(~np.asarray(frame == frame)) + + # cast type + frame = DataFrame(mat, columns=["A", "B", "C"], index=[1, 2], dtype=np.float64) + assert frame.values.dtype == np.float64 + + # Check non-masked values + mat2 = ma.copy(mat) + mat2[0, 0] = 1 + mat2[1, 2] = 2 + frame = DataFrame(mat2, columns=["A", "B", "C"], index=[1, 2]) + assert 1 == frame["A"][1] + assert 2 == frame["C"][2] + + # masked np.datetime64 stays (use NaT as null) + mat = ma.masked_all((2, 3), dtype="M8[ns]") + # 2-D input + frame = DataFrame(mat, columns=["A", "B", "C"], index=[1, 2]) + + assert len(frame.index) == 2 + assert len(frame.columns) == 3 + assert isna(frame).values.all() + + # cast type + msg = r"datetime64\[ns\] values and dtype=int64 is not supported" + with pytest.raises(TypeError, match=msg): + DataFrame(mat, columns=["A", "B", "C"], index=[1, 2], dtype=np.int64) + + # Check non-masked values + mat2 = ma.copy(mat) + mat2[0, 0] = 1 + mat2[1, 2] = 2 + frame = DataFrame(mat2, columns=["A", "B", "C"], index=[1, 2]) + assert 1 == frame["A"].astype("i8")[1] + assert 2 == frame["C"].astype("i8")[2] + + # masked bool promoted to object + mat = ma.masked_all((2, 3), dtype=bool) + # 2-D input + frame = DataFrame(mat, columns=["A", "B", "C"], index=[1, 2]) + + assert len(frame.index) == 2 + assert len(frame.columns) == 3 + assert np.all(~np.asarray(frame == frame)) + + # cast type + frame = DataFrame(mat, columns=["A", "B", "C"], index=[1, 2], dtype=object) + assert frame.values.dtype == object + + # Check non-masked values + mat2 = ma.copy(mat) + mat2[0, 0] = True + mat2[1, 2] = False + frame = DataFrame(mat2, columns=["A", "B", "C"], index=[1, 2]) + assert frame["A"][1] is True + assert frame["C"][2] is False + + def test_constructor_maskedarray_hardened(self): + # Check numpy masked arrays with hard masks -- from GH24574 + mat_hard = ma.masked_all((2, 2), dtype=float).harden_mask() + result = DataFrame(mat_hard, columns=["A", "B"], index=[1, 2]) + expected = DataFrame( + {"A": [np.nan, np.nan], "B": [np.nan, np.nan]}, + columns=["A", "B"], + index=[1, 2], + dtype=float, + ) + tm.assert_frame_equal(result, expected) + # Check case where mask is hard but no data are masked + mat_hard = ma.ones((2, 2), dtype=float).harden_mask() + result = DataFrame(mat_hard, columns=["A", "B"], index=[1, 2]) + expected = DataFrame( + {"A": [1.0, 1.0], "B": [1.0, 1.0]}, + columns=["A", "B"], + index=[1, 2], + dtype=float, + ) + tm.assert_frame_equal(result, expected) + + def test_constructor_maskedrecarray_dtype(self): + # Ensure constructor honors dtype + data = np.ma.array( + np.ma.zeros(5, dtype=[("date", " None: + self._lst = lst + + def __getitem__(self, n): + return self._lst.__getitem__(n) + + def __len__(self) -> int: + return self._lst.__len__() + + lst_containers = [DummyContainer([1, "a"]), DummyContainer([2, "b"])] + columns = ["num", "str"] + result = DataFrame(lst_containers, columns=columns) + expected = DataFrame([[1, "a"], [2, "b"]], columns=columns) + tm.assert_frame_equal(result, expected, check_dtype=False) + + def test_constructor_stdlib_array(self): + # GH 4297 + # support Array + result = DataFrame({"A": array.array("i", range(10))}) + expected = DataFrame({"A": list(range(10))}) + tm.assert_frame_equal(result, expected, check_dtype=False) + + expected = DataFrame([list(range(10)), list(range(10))]) + result = DataFrame([array.array("i", range(10)), array.array("i", range(10))]) + tm.assert_frame_equal(result, expected, check_dtype=False) + + def test_constructor_range(self): + # GH26342 + result = DataFrame(range(10)) + expected = DataFrame(list(range(10))) + tm.assert_frame_equal(result, expected) + + def test_constructor_list_of_ranges(self): + result = DataFrame([range(10), range(10)]) + expected = DataFrame([list(range(10)), list(range(10))]) + tm.assert_frame_equal(result, expected) + + def test_constructor_iterable(self): + # GH 21987 + class Iter: + def __iter__(self) -> Iterator: + for i in range(10): + yield [1, 2, 3] + + expected = DataFrame([[1, 2, 3]] * 10) + result = DataFrame(Iter()) + tm.assert_frame_equal(result, expected) + + def test_constructor_iterator(self): + result = DataFrame(iter(range(10))) + expected = DataFrame(list(range(10))) + tm.assert_frame_equal(result, expected) + + def test_constructor_list_of_iterators(self): + result = DataFrame([iter(range(10)), iter(range(10))]) + expected = DataFrame([list(range(10)), list(range(10))]) + tm.assert_frame_equal(result, expected) + + def test_constructor_generator(self): + # related #2305 + + gen1 = (i for i in range(10)) + gen2 = (i for i in range(10)) + + expected = DataFrame([list(range(10)), list(range(10))]) + result = DataFrame([gen1, gen2]) + tm.assert_frame_equal(result, expected) + + gen = ([i, "a"] for i in range(10)) + result = DataFrame(gen) + expected = DataFrame({0: range(10), 1: "a"}) + tm.assert_frame_equal(result, expected, check_dtype=False) + + def test_constructor_list_of_dicts(self): + result = DataFrame([{}]) + expected = DataFrame(index=RangeIndex(1), columns=[]) + tm.assert_frame_equal(result, expected) + + def test_constructor_ordered_dict_nested_preserve_order(self): + # see gh-18166 + nested1 = OrderedDict([("b", 1), ("a", 2)]) + nested2 = OrderedDict([("b", 2), ("a", 5)]) + data = OrderedDict([("col2", nested1), ("col1", nested2)]) + result = DataFrame(data) + data = {"col2": [1, 2], "col1": [2, 5]} + expected = DataFrame(data=data, index=["b", "a"]) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("dict_type", [dict, OrderedDict]) + def test_constructor_ordered_dict_preserve_order(self, dict_type): + # see gh-13304 + expected = DataFrame([[2, 1]], columns=["b", "a"]) + + data = dict_type() + data["b"] = [2] + data["a"] = [1] + + result = DataFrame(data) + tm.assert_frame_equal(result, expected) + + data = dict_type() + data["b"] = 2 + data["a"] = 1 + + result = DataFrame([data]) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("dict_type", [dict, OrderedDict]) + def test_constructor_ordered_dict_conflicting_orders(self, dict_type): + # the first dict element sets the ordering for the DataFrame, + # even if there are conflicting orders from subsequent ones + row_one = dict_type() + row_one["b"] = 2 + row_one["a"] = 1 + + row_two = dict_type() + row_two["a"] = 1 + row_two["b"] = 2 + + row_three = {"b": 2, "a": 1} + + expected = DataFrame([[2, 1], [2, 1]], columns=["b", "a"]) + result = DataFrame([row_one, row_two]) + tm.assert_frame_equal(result, expected) + + expected = DataFrame([[2, 1], [2, 1], [2, 1]], columns=["b", "a"]) + result = DataFrame([row_one, row_two, row_three]) + tm.assert_frame_equal(result, expected) + + def test_constructor_list_of_series_aligned_index(self): + series = [Series(i, index=["b", "a", "c"], name=str(i)) for i in range(3)] + result = DataFrame(series) + expected = DataFrame( + {"b": [0, 1, 2], "a": [0, 1, 2], "c": [0, 1, 2]}, + columns=["b", "a", "c"], + index=["0", "1", "2"], + ) + tm.assert_frame_equal(result, expected) + + def test_constructor_list_of_derived_dicts(self): + class CustomDict(dict): + pass + + d = {"a": 1.5, "b": 3} + + data_custom = [CustomDict(d)] + data = [d] + + result_custom = DataFrame(data_custom) + result = DataFrame(data) + tm.assert_frame_equal(result, result_custom) + + def test_constructor_ragged(self): + data = { + "A": np.random.default_rng(2).standard_normal(10), + "B": np.random.default_rng(2).standard_normal(8), + } + with pytest.raises(ValueError, match="All arrays must be of the same length"): + DataFrame(data) + + def test_constructor_scalar(self): + idx = Index(range(3)) + df = DataFrame({"a": 0}, index=idx) + expected = DataFrame({"a": [0, 0, 0]}, index=idx) + tm.assert_frame_equal(df, expected, check_dtype=False) + + def test_constructor_Series_copy_bug(self, float_frame): + df = DataFrame(float_frame["A"], index=float_frame.index, columns=["A"]) + df.copy() + + def test_constructor_mixed_dict_and_Series(self): + data = {} + data["A"] = {"foo": 1, "bar": 2, "baz": 3} + data["B"] = Series([4, 3, 2, 1], index=["bar", "qux", "baz", "foo"]) + + result = DataFrame(data) + assert result.index.is_monotonic_increasing + + # ordering ambiguous, raise exception + with pytest.raises(ValueError, match="ambiguous ordering"): + DataFrame({"A": ["a", "b"], "B": {"a": "a", "b": "b"}}) + + # this is OK though + result = DataFrame({"A": ["a", "b"], "B": Series(["a", "b"], index=["a", "b"])}) + expected = DataFrame({"A": ["a", "b"], "B": ["a", "b"]}, index=["a", "b"]) + tm.assert_frame_equal(result, expected) + + def test_constructor_mixed_type_rows(self): + # Issue 25075 + data = [[1, 2], (3, 4)] + result = DataFrame(data) + expected = DataFrame([[1, 2], [3, 4]]) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "tuples,lists", + [ + ((), []), + ((()), []), + (((), ()), [(), ()]), + (((), ()), [[], []]), + (([], []), [[], []]), + (([1], [2]), [[1], [2]]), # GH 32776 + (([1, 2, 3], [4, 5, 6]), [[1, 2, 3], [4, 5, 6]]), + ], + ) + def test_constructor_tuple(self, tuples, lists): + # GH 25691 + result = DataFrame(tuples) + expected = DataFrame(lists) + tm.assert_frame_equal(result, expected) + + def test_constructor_list_of_tuples(self): + result = DataFrame({"A": [(1, 2), (3, 4)]}) + expected = DataFrame({"A": Series([(1, 2), (3, 4)])}) + tm.assert_frame_equal(result, expected) + + def test_constructor_list_of_namedtuples(self): + # GH11181 + named_tuple = namedtuple("Pandas", list("ab")) + tuples = [named_tuple(1, 3), named_tuple(2, 4)] + expected = DataFrame({"a": [1, 2], "b": [3, 4]}) + result = DataFrame(tuples) + tm.assert_frame_equal(result, expected) + + # with columns + expected = DataFrame({"y": [1, 2], "z": [3, 4]}) + result = DataFrame(tuples, columns=["y", "z"]) + tm.assert_frame_equal(result, expected) + + def test_constructor_list_of_dataclasses(self): + # GH21910 + Point = make_dataclass("Point", [("x", int), ("y", int)]) + + data = [Point(0, 3), Point(1, 3)] + expected = DataFrame({"x": [0, 1], "y": [3, 3]}) + result = DataFrame(data) + tm.assert_frame_equal(result, expected) + + def test_constructor_list_of_dataclasses_with_varying_types(self): + # GH21910 + # varying types + Point = make_dataclass("Point", [("x", int), ("y", int)]) + HLine = make_dataclass("HLine", [("x0", int), ("x1", int), ("y", int)]) + + data = [Point(0, 3), HLine(1, 3, 3)] + + expected = DataFrame( + {"x": [0, np.nan], "y": [3, 3], "x0": [np.nan, 1], "x1": [np.nan, 3]} + ) + result = DataFrame(data) + tm.assert_frame_equal(result, expected) + + def test_constructor_list_of_dataclasses_error_thrown(self): + # GH21910 + Point = make_dataclass("Point", [("x", int), ("y", int)]) + + # expect TypeError + msg = "asdict() should be called on dataclass instances" + with pytest.raises(TypeError, match=re.escape(msg)): + DataFrame([Point(0, 0), {"x": 1, "y": 0}]) + + def test_constructor_list_of_dict_order(self): + # GH10056 + data = [ + {"First": 1, "Second": 4, "Third": 7, "Fourth": 10}, + {"Second": 5, "First": 2, "Fourth": 11, "Third": 8}, + {"Second": 6, "First": 3, "Fourth": 12, "Third": 9, "YYY": 14, "XXX": 13}, + ] + expected = DataFrame( + { + "First": [1, 2, 3], + "Second": [4, 5, 6], + "Third": [7, 8, 9], + "Fourth": [10, 11, 12], + "YYY": [None, None, 14], + "XXX": [None, None, 13], + } + ) + result = DataFrame(data) + tm.assert_frame_equal(result, expected) + + def test_constructor_Series_named(self): + a = Series([1, 2, 3], index=["a", "b", "c"], name="x") + df = DataFrame(a) + assert df.columns[0] == "x" + tm.assert_index_equal(df.index, a.index) + + # ndarray like + arr = np.random.default_rng(2).standard_normal(10) + s = Series(arr, name="x") + df = DataFrame(s) + expected = DataFrame({"x": s}) + tm.assert_frame_equal(df, expected) + + s = Series(arr, index=range(3, 13)) + df = DataFrame(s) + expected = DataFrame({0: s}) + tm.assert_frame_equal(df, expected) + + msg = r"Shape of passed values is \(10, 1\), indices imply \(10, 2\)" + with pytest.raises(ValueError, match=msg): + DataFrame(s, columns=[1, 2]) + + # #2234 + a = Series([], name="x", dtype=object) + df = DataFrame(a) + assert df.columns[0] == "x" + + # series with name and w/o + s1 = Series(arr, name="x") + df = DataFrame([s1, arr]).T + expected = DataFrame({"x": s1, "Unnamed 0": arr}, columns=["x", "Unnamed 0"]) + tm.assert_frame_equal(df, expected) + + # this is a bit non-intuitive here; the series collapse down to arrays + df = DataFrame([arr, s1]).T + expected = DataFrame({1: s1, 0: arr}, columns=[0, 1]) + tm.assert_frame_equal(df, expected) + + def test_constructor_Series_named_and_columns(self): + # GH 9232 validation + + s0 = Series(range(5), name=0) + s1 = Series(range(5), name=1) + + # matching name and column gives standard frame + tm.assert_frame_equal(DataFrame(s0, columns=[0]), s0.to_frame()) + tm.assert_frame_equal(DataFrame(s1, columns=[1]), s1.to_frame()) + + # non-matching produces empty frame + assert DataFrame(s0, columns=[1]).empty + assert DataFrame(s1, columns=[0]).empty + + def test_constructor_Series_differently_indexed(self): + # name + s1 = Series([1, 2, 3], index=["a", "b", "c"], name="x") + + # no name + s2 = Series([1, 2, 3], index=["a", "b", "c"]) + + other_index = Index(["a", "b"]) + + df1 = DataFrame(s1, index=other_index) + exp1 = DataFrame(s1.reindex(other_index)) + assert df1.columns[0] == "x" + tm.assert_frame_equal(df1, exp1) + + df2 = DataFrame(s2, index=other_index) + exp2 = DataFrame(s2.reindex(other_index)) + assert df2.columns[0] == 0 + tm.assert_index_equal(df2.index, other_index) + tm.assert_frame_equal(df2, exp2) + + @pytest.mark.parametrize( + "name_in1,name_in2,name_in3,name_out", + [ + ("idx", "idx", "idx", "idx"), + ("idx", "idx", None, None), + ("idx", None, None, None), + ("idx1", "idx2", None, None), + ("idx1", "idx1", "idx2", None), + ("idx1", "idx2", "idx3", None), + (None, None, None, None), + ], + ) + def test_constructor_index_names(self, name_in1, name_in2, name_in3, name_out): + # GH13475 + indices = [ + Index(["a", "b", "c"], name=name_in1), + Index(["b", "c", "d"], name=name_in2), + Index(["c", "d", "e"], name=name_in3), + ] + series = { + c: Series([0, 1, 2], index=i) for i, c in zip(indices, ["x", "y", "z"]) + } + result = DataFrame(series) + + exp_ind = Index(["a", "b", "c", "d", "e"], name=name_out) + expected = DataFrame( + { + "x": [0, 1, 2, np.nan, np.nan], + "y": [np.nan, 0, 1, 2, np.nan], + "z": [np.nan, np.nan, 0, 1, 2], + }, + index=exp_ind, + ) + + tm.assert_frame_equal(result, expected) + + def test_constructor_manager_resize(self, float_frame): + index = list(float_frame.index[:5]) + columns = list(float_frame.columns[:3]) + + msg = "Passing a BlockManager to DataFrame" + with tm.assert_produces_warning( + DeprecationWarning, match=msg, check_stacklevel=False + ): + result = DataFrame(float_frame._mgr, index=index, columns=columns) + tm.assert_index_equal(result.index, Index(index)) + tm.assert_index_equal(result.columns, Index(columns)) + + def test_constructor_mix_series_nonseries(self, float_frame): + df = DataFrame( + {"A": float_frame["A"], "B": list(float_frame["B"])}, columns=["A", "B"] + ) + tm.assert_frame_equal(df, float_frame.loc[:, ["A", "B"]]) + + msg = "does not match index length" + with pytest.raises(ValueError, match=msg): + DataFrame({"A": float_frame["A"], "B": list(float_frame["B"])[:-2]}) + + def test_constructor_miscast_na_int_dtype(self): + msg = r"Cannot convert non-finite values \(NA or inf\) to integer" + + with pytest.raises(IntCastingNaNError, match=msg): + DataFrame([[np.nan, 1], [1, 0]], dtype=np.int64) + + def test_constructor_column_duplicates(self): + # it works! #2079 + df = DataFrame([[8, 5]], columns=["a", "a"]) + edf = DataFrame([[8, 5]]) + edf.columns = ["a", "a"] + + tm.assert_frame_equal(df, edf) + + idf = DataFrame.from_records([(8, 5)], columns=["a", "a"]) + + tm.assert_frame_equal(idf, edf) + + def test_constructor_empty_with_string_dtype(self, using_infer_string): + # GH 9428 + expected = DataFrame(index=[0, 1], columns=[0, 1], dtype=object) + expected_str = DataFrame( + index=[0, 1], columns=[0, 1], dtype=pd.StringDtype(na_value=np.nan) + ) + + df = DataFrame(index=[0, 1], columns=[0, 1], dtype=str) + if using_infer_string: + tm.assert_frame_equal(df, expected_str) + else: + tm.assert_frame_equal(df, expected) + df = DataFrame(index=[0, 1], columns=[0, 1], dtype=np.str_) + tm.assert_frame_equal(df, expected) + df = DataFrame(index=[0, 1], columns=[0, 1], dtype="U5") + tm.assert_frame_equal(df, expected) + + def test_constructor_empty_with_string_extension(self, nullable_string_dtype): + # GH 34915 + expected = DataFrame(columns=["c1"], dtype=nullable_string_dtype) + df = DataFrame(columns=["c1"], dtype=nullable_string_dtype) + tm.assert_frame_equal(df, expected) + + def test_constructor_single_value(self): + # expecting single value upcasting here + df = DataFrame(0.0, index=[1, 2, 3], columns=["a", "b", "c"]) + tm.assert_frame_equal( + df, DataFrame(np.zeros(df.shape).astype("float64"), df.index, df.columns) + ) + + df = DataFrame(0, index=[1, 2, 3], columns=["a", "b", "c"]) + tm.assert_frame_equal( + df, DataFrame(np.zeros(df.shape).astype("int64"), df.index, df.columns) + ) + + df = DataFrame("a", index=[1, 2], columns=["a", "c"]) + tm.assert_frame_equal( + df, + DataFrame( + np.array([["a", "a"], ["a", "a"]], dtype=object), + index=[1, 2], + columns=["a", "c"], + ), + ) + + msg = "DataFrame constructor not properly called!" + with pytest.raises(ValueError, match=msg): + DataFrame("a", [1, 2]) + with pytest.raises(ValueError, match=msg): + DataFrame("a", columns=["a", "c"]) + + msg = "incompatible data and dtype" + with pytest.raises(TypeError, match=msg): + DataFrame("a", [1, 2], ["a", "c"], float) + + def test_constructor_with_datetimes(self, using_infer_string): + intname = np.dtype(int).name + floatname = np.dtype(np.float64).name + objectname = np.dtype(np.object_).name + + # single item + df = DataFrame( + { + "A": 1, + "B": "foo", + "C": "bar", + "D": Timestamp("20010101"), + "E": datetime(2001, 1, 2, 0, 0), + }, + index=np.arange(10), + ) + result = df.dtypes + expected = Series( + [np.dtype("int64")] + + [ + np.dtype(objectname) + if not using_infer_string + else pd.StringDtype(na_value=np.nan) + ] + * 2 + + [np.dtype("M8[s]"), np.dtype("M8[us]")], + index=list("ABCDE"), + ) + tm.assert_series_equal(result, expected) + + # check with ndarray construction ndim==0 (e.g. we are passing a ndim 0 + # ndarray with a dtype specified) + df = DataFrame( + { + "a": 1.0, + "b": 2, + "c": "foo", + floatname: np.array(1.0, dtype=floatname), + intname: np.array(1, dtype=intname), + }, + index=np.arange(10), + ) + result = df.dtypes + expected = Series( + [np.dtype("float64")] + + [np.dtype("int64")] + + [ + np.dtype("object") + if not using_infer_string + else pd.StringDtype(na_value=np.nan) + ] + + [np.dtype("float64")] + + [np.dtype(intname)], + index=["a", "b", "c", floatname, intname], + ) + tm.assert_series_equal(result, expected) + + # check with ndarray construction ndim>0 + df = DataFrame( + { + "a": 1.0, + "b": 2, + "c": "foo", + floatname: np.array([1.0] * 10, dtype=floatname), + intname: np.array([1] * 10, dtype=intname), + }, + index=np.arange(10), + ) + result = df.dtypes + expected = Series( + [np.dtype("float64")] + + [np.dtype("int64")] + + [ + np.dtype("object") + if not using_infer_string + else pd.StringDtype(na_value=np.nan) + ] + + [np.dtype("float64")] + + [np.dtype(intname)], + index=["a", "b", "c", floatname, intname], + ) + tm.assert_series_equal(result, expected) + + def test_constructor_with_datetimes1(self): + # GH 2809 + ind = date_range(start="2000-01-01", freq="D", periods=10) + datetimes = [ts.to_pydatetime() for ts in ind] + datetime_s = Series(datetimes) + assert datetime_s.dtype == "M8[ns]" + + def test_constructor_with_datetimes2(self): + # GH 2810 + ind = date_range(start="2000-01-01", freq="D", periods=10) + datetimes = [ts.to_pydatetime() for ts in ind] + dates = [ts.date() for ts in ind] + df = DataFrame(datetimes, columns=["datetimes"]) + df["dates"] = dates + result = df.dtypes + expected = Series( + [np.dtype("datetime64[ns]"), np.dtype("object")], + index=["datetimes", "dates"], + ) + tm.assert_series_equal(result, expected) + + def test_constructor_with_datetimes3(self): + # GH 7594 + # don't coerce tz-aware + tz = pytz.timezone("US/Eastern") + dt = tz.localize(datetime(2012, 1, 1)) + + df = DataFrame({"End Date": dt}, index=[0]) + assert df.iat[0, 0] == dt + tm.assert_series_equal( + df.dtypes, Series({"End Date": "datetime64[us, US/Eastern]"}, dtype=object) + ) + + df = DataFrame([{"End Date": dt}]) + assert df.iat[0, 0] == dt + tm.assert_series_equal( + df.dtypes, Series({"End Date": "datetime64[ns, US/Eastern]"}, dtype=object) + ) + + def test_constructor_with_datetimes4(self): + # tz-aware (UTC and other tz's) + # GH 8411 + dr = date_range("20130101", periods=3) + df = DataFrame({"value": dr}) + assert df.iat[0, 0].tz is None + dr = date_range("20130101", periods=3, tz="UTC") + df = DataFrame({"value": dr}) + assert str(df.iat[0, 0].tz) == "UTC" + dr = date_range("20130101", periods=3, tz="US/Eastern") + df = DataFrame({"value": dr}) + assert str(df.iat[0, 0].tz) == "US/Eastern" + + def test_constructor_with_datetimes5(self): + # GH 7822 + # preserver an index with a tz on dict construction + i = date_range("1/1/2011", periods=5, freq="10s", tz="US/Eastern") + + expected = DataFrame({"a": i.to_series().reset_index(drop=True)}) + df = DataFrame() + df["a"] = i + tm.assert_frame_equal(df, expected) + + df = DataFrame({"a": i}) + tm.assert_frame_equal(df, expected) + + def test_constructor_with_datetimes6(self): + # multiples + i = date_range("1/1/2011", periods=5, freq="10s", tz="US/Eastern") + i_no_tz = date_range("1/1/2011", periods=5, freq="10s") + df = DataFrame({"a": i, "b": i_no_tz}) + expected = DataFrame({"a": i.to_series().reset_index(drop=True), "b": i_no_tz}) + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize( + "arr", + [ + np.array([None, None, None, None, datetime.now(), None]), + np.array([None, None, datetime.now(), None]), + [[np.datetime64("NaT")], [None]], + [[np.datetime64("NaT")], [pd.NaT]], + [[None], [np.datetime64("NaT")]], + [[None], [pd.NaT]], + [[pd.NaT], [np.datetime64("NaT")]], + [[pd.NaT], [None]], + ], + ) + def test_constructor_datetimes_with_nulls(self, arr): + # gh-15869, GH#11220 + result = DataFrame(arr).dtypes + expected = Series([np.dtype("datetime64[ns]")]) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("order", ["K", "A", "C", "F"]) + @pytest.mark.parametrize( + "unit", + ["M", "D", "h", "m", "s", "ms", "us", "ns"], + ) + def test_constructor_datetimes_non_ns(self, order, unit): + dtype = f"datetime64[{unit}]" + na = np.array( + [ + ["2015-01-01", "2015-01-02", "2015-01-03"], + ["2017-01-01", "2017-01-02", "2017-02-03"], + ], + dtype=dtype, + order=order, + ) + df = DataFrame(na) + expected = DataFrame(na.astype("M8[ns]")) + if unit in ["M", "D", "h", "m"]: + with pytest.raises(TypeError, match="Cannot cast"): + expected.astype(dtype) + + # instead the constructor casts to the closest supported reso, i.e. "s" + expected = expected.astype("datetime64[s]") + else: + expected = expected.astype(dtype=dtype) + + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize("order", ["K", "A", "C", "F"]) + @pytest.mark.parametrize( + "unit", + [ + "D", + "h", + "m", + "s", + "ms", + "us", + "ns", + ], + ) + def test_constructor_timedelta_non_ns(self, order, unit): + dtype = f"timedelta64[{unit}]" + na = np.array( + [ + [np.timedelta64(1, "D"), np.timedelta64(2, "D")], + [np.timedelta64(4, "D"), np.timedelta64(5, "D")], + ], + dtype=dtype, + order=order, + ) + df = DataFrame(na) + if unit in ["D", "h", "m"]: + # we get the nearest supported unit, i.e. "s" + exp_unit = "s" + else: + exp_unit = unit + exp_dtype = np.dtype(f"m8[{exp_unit}]") + expected = DataFrame( + [ + [Timedelta(1, "D"), Timedelta(2, "D")], + [Timedelta(4, "D"), Timedelta(5, "D")], + ], + dtype=exp_dtype, + ) + # TODO(2.0): ideally we should get the same 'expected' without passing + # dtype=exp_dtype. + tm.assert_frame_equal(df, expected) + + def test_constructor_for_list_with_dtypes(self, using_infer_string): + # test list of lists/ndarrays + df = DataFrame([np.arange(5) for x in range(5)]) + result = df.dtypes + expected = Series([np.dtype("int")] * 5) + tm.assert_series_equal(result, expected) + + df = DataFrame([np.array(np.arange(5), dtype="int32") for x in range(5)]) + result = df.dtypes + expected = Series([np.dtype("int32")] * 5) + tm.assert_series_equal(result, expected) + + # overflow issue? (we always expected int64 upcasting here) + df = DataFrame({"a": [2**31, 2**31 + 1]}) + assert df.dtypes.iloc[0] == np.dtype("int64") + + # GH #2751 (construction with no index specified), make sure we cast to + # platform values + df = DataFrame([1, 2]) + assert df.dtypes.iloc[0] == np.dtype("int64") + + df = DataFrame([1.0, 2.0]) + assert df.dtypes.iloc[0] == np.dtype("float64") + + df = DataFrame({"a": [1, 2]}) + assert df.dtypes.iloc[0] == np.dtype("int64") + + df = DataFrame({"a": [1.0, 2.0]}) + assert df.dtypes.iloc[0] == np.dtype("float64") + + df = DataFrame({"a": 1}, index=range(3)) + assert df.dtypes.iloc[0] == np.dtype("int64") + + df = DataFrame({"a": 1.0}, index=range(3)) + assert df.dtypes.iloc[0] == np.dtype("float64") + + # with object list + df = DataFrame( + { + "a": [1, 2, 4, 7], + "b": [1.2, 2.3, 5.1, 6.3], + "c": list("abcd"), + "d": [datetime(2000, 1, 1) for i in range(4)], + "e": [1.0, 2, 4.0, 7], + } + ) + result = df.dtypes + expected = Series( + [ + np.dtype("int64"), + np.dtype("float64"), + np.dtype("object") + if not using_infer_string + else pd.StringDtype(na_value=np.nan), + np.dtype("datetime64[ns]"), + np.dtype("float64"), + ], + index=list("abcde"), + ) + tm.assert_series_equal(result, expected) + + def test_constructor_frame_copy(self, float_frame): + cop = DataFrame(float_frame, copy=True) + cop["A"] = 5 + assert (cop["A"] == 5).all() + assert not (float_frame["A"] == 5).all() + + def test_constructor_frame_shallow_copy(self, float_frame): + # constructing a DataFrame from DataFrame with copy=False should still + # give a "shallow" copy (share data, not attributes) + # https://github.com/pandas-dev/pandas/issues/49523 + orig = float_frame.copy() + cop = DataFrame(float_frame) + assert cop._mgr is not float_frame._mgr + # Overwriting index of copy doesn't change original + cop.index = np.arange(len(cop)) + tm.assert_frame_equal(float_frame, orig) + + def test_constructor_ndarray_copy( + self, float_frame, using_array_manager, using_copy_on_write + ): + if not using_array_manager: + arr = float_frame.values.copy() + df = DataFrame(arr) + + arr[5] = 5 + if using_copy_on_write: + assert not (df.values[5] == 5).all() + else: + assert (df.values[5] == 5).all() + + df = DataFrame(arr, copy=True) + arr[6] = 6 + assert not (df.values[6] == 6).all() + else: + arr = float_frame.values.copy() + # default: copy to ensure contiguous arrays + df = DataFrame(arr) + assert df._mgr.arrays[0].flags.c_contiguous + arr[0, 0] = 100 + assert df.iloc[0, 0] != 100 + + # manually specify copy=False + df = DataFrame(arr, copy=False) + assert not df._mgr.arrays[0].flags.c_contiguous + arr[0, 0] = 1000 + assert df.iloc[0, 0] == 1000 + + def test_constructor_series_copy(self, float_frame): + series = float_frame._series + + df = DataFrame({"A": series["A"]}, copy=True) + # TODO can be replaced with `df.loc[:, "A"] = 5` after deprecation about + # inplace mutation is enforced + df.loc[df.index[0] : df.index[-1], "A"] = 5 + + assert not (series["A"] == 5).all() + + @pytest.mark.parametrize( + "df", + [ + DataFrame([[1, 2, 3], [4, 5, 6]], index=[1, np.nan]), + DataFrame([[1, 2, 3], [4, 5, 6]], columns=[1.1, 2.2, np.nan]), + DataFrame([[0, 1, 2, 3], [4, 5, 6, 7]], columns=[np.nan, 1.1, 2.2, np.nan]), + DataFrame( + [[0.0, 1, 2, 3.0], [4, 5, 6, 7]], columns=[np.nan, 1.1, 2.2, np.nan] + ), + DataFrame([[0.0, 1, 2, 3.0], [4, 5, 6, 7]], columns=[np.nan, 1, 2, 2]), + ], + ) + def test_constructor_with_nas(self, df): + # GH 5016 + # na's in indices + # GH 21428 (non-unique columns) + + for i in range(len(df.columns)): + df.iloc[:, i] + + indexer = np.arange(len(df.columns))[isna(df.columns)] + + # No NaN found -> error + if len(indexer) == 0: + with pytest.raises(KeyError, match="^nan$"): + df.loc[:, np.nan] + # single nan should result in Series + elif len(indexer) == 1: + tm.assert_series_equal(df.iloc[:, indexer[0]], df.loc[:, np.nan]) + # multiple nans should result in DataFrame + else: + tm.assert_frame_equal(df.iloc[:, indexer], df.loc[:, np.nan]) + + def test_constructor_lists_to_object_dtype(self): + # from #1074 + d = DataFrame({"a": [np.nan, False]}) + assert d["a"].dtype == np.object_ + assert not d["a"][1] + + def test_constructor_ndarray_categorical_dtype(self): + cat = Categorical(["A", "B", "C"]) + arr = np.array(cat).reshape(-1, 1) + arr = np.broadcast_to(arr, (3, 4)) + + result = DataFrame(arr, dtype=cat.dtype) + + expected = DataFrame({0: cat, 1: cat, 2: cat, 3: cat}) + tm.assert_frame_equal(result, expected) + + def test_constructor_categorical(self): + # GH8626 + + # dict creation + df = DataFrame({"A": list("abc")}, dtype="category") + expected = Series(list("abc"), dtype="category", name="A") + tm.assert_series_equal(df["A"], expected) + + # to_frame + s = Series(list("abc"), dtype="category") + result = s.to_frame() + expected = Series(list("abc"), dtype="category", name=0) + tm.assert_series_equal(result[0], expected) + result = s.to_frame(name="foo") + expected = Series(list("abc"), dtype="category", name="foo") + tm.assert_series_equal(result["foo"], expected) + + # list-like creation + df = DataFrame(list("abc"), dtype="category") + expected = Series(list("abc"), dtype="category", name=0) + tm.assert_series_equal(df[0], expected) + + def test_construct_from_1item_list_of_categorical(self): + # pre-2.0 this behaved as DataFrame({0: cat}), in 2.0 we remove + # Categorical special case + # ndim != 1 + cat = Categorical(list("abc")) + df = DataFrame([cat]) + expected = DataFrame([cat.astype(object)]) + tm.assert_frame_equal(df, expected) + + def test_construct_from_list_of_categoricals(self): + # pre-2.0 this behaved as DataFrame({0: cat}), in 2.0 we remove + # Categorical special case + + df = DataFrame([Categorical(list("abc")), Categorical(list("abd"))]) + expected = DataFrame([["a", "b", "c"], ["a", "b", "d"]]) + tm.assert_frame_equal(df, expected) + + def test_from_nested_listlike_mixed_types(self): + # pre-2.0 this behaved as DataFrame({0: cat}), in 2.0 we remove + # Categorical special case + # mixed + df = DataFrame([Categorical(list("abc")), list("def")]) + expected = DataFrame([["a", "b", "c"], ["d", "e", "f"]]) + tm.assert_frame_equal(df, expected) + + def test_construct_from_listlikes_mismatched_lengths(self): + df = DataFrame([Categorical(list("abc")), Categorical(list("abdefg"))]) + expected = DataFrame([list("abc"), list("abdefg")]) + tm.assert_frame_equal(df, expected) + + def test_constructor_categorical_series(self): + items = [1, 2, 3, 1] + exp = Series(items).astype("category") + res = Series(items, dtype="category") + tm.assert_series_equal(res, exp) + + items = ["a", "b", "c", "a"] + exp = Series(items).astype("category") + res = Series(items, dtype="category") + tm.assert_series_equal(res, exp) + + # insert into frame with different index + # GH 8076 + index = date_range("20000101", periods=3) + expected = Series( + Categorical(values=[np.nan, np.nan, np.nan], categories=["a", "b", "c"]) + ) + expected.index = index + + expected = DataFrame({"x": expected}) + df = DataFrame({"x": Series(["a", "b", "c"], dtype="category")}, index=index) + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize( + "dtype", + tm.ALL_NUMERIC_DTYPES + + tm.DATETIME64_DTYPES + + tm.TIMEDELTA64_DTYPES + + tm.BOOL_DTYPES, + ) + def test_check_dtype_empty_numeric_column(self, dtype): + # GH24386: Ensure dtypes are set correctly for an empty DataFrame. + # Empty DataFrame is generated via dictionary data with non-overlapping columns. + data = DataFrame({"a": [1, 2]}, columns=["b"], dtype=dtype) + + assert data.b.dtype == dtype + + @pytest.mark.parametrize( + "dtype", tm.STRING_DTYPES + tm.BYTES_DTYPES + tm.OBJECT_DTYPES + ) + def test_check_dtype_empty_string_column(self, request, dtype, using_array_manager): + # GH24386: Ensure dtypes are set correctly for an empty DataFrame. + # Empty DataFrame is generated via dictionary data with non-overlapping columns. + data = DataFrame({"a": [1, 2]}, columns=["b"], dtype=dtype) + + if using_array_manager and dtype in tm.BYTES_DTYPES: + # TODO(ArrayManager) astype to bytes dtypes does not yet give object dtype + td.mark_array_manager_not_yet_implemented(request) + + assert data.b.dtype.name == "object" + + def test_to_frame_with_falsey_names(self): + # GH 16114 + result = Series(name=0, dtype=object).to_frame().dtypes + expected = Series({0: object}) + tm.assert_series_equal(result, expected) + + result = DataFrame(Series(name=0, dtype=object)).dtypes + tm.assert_series_equal(result, expected) + + @pytest.mark.arm_slow + @pytest.mark.parametrize("dtype", [None, "uint8", "category"]) + def test_constructor_range_dtype(self, dtype): + expected = DataFrame({"A": [0, 1, 2, 3, 4]}, dtype=dtype or "int64") + + # GH 26342 + result = DataFrame(range(5), columns=["A"], dtype=dtype) + tm.assert_frame_equal(result, expected) + + # GH 16804 + result = DataFrame({"A": range(5)}, dtype=dtype) + tm.assert_frame_equal(result, expected) + + def test_frame_from_list_subclass(self): + # GH21226 + class List(list): + pass + + expected = DataFrame([[1, 2, 3], [4, 5, 6]]) + result = DataFrame(List([List([1, 2, 3]), List([4, 5, 6])])) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "extension_arr", + [ + Categorical(list("aabbc")), + SparseArray([1, np.nan, np.nan, np.nan]), + IntervalArray([Interval(0, 1), Interval(1, 5)]), + PeriodArray(pd.period_range(start="1/1/2017", end="1/1/2018", freq="M")), + ], + ) + def test_constructor_with_extension_array(self, extension_arr): + # GH11363 + expected = DataFrame(Series(extension_arr)) + result = DataFrame(extension_arr) + tm.assert_frame_equal(result, expected) + + def test_datetime_date_tuple_columns_from_dict(self): + # GH 10863 + v = date.today() + tup = v, v + result = DataFrame({tup: Series(range(3), index=range(3))}, columns=[tup]) + expected = DataFrame([0, 1, 2], columns=Index(Series([tup]))) + tm.assert_frame_equal(result, expected) + + def test_construct_with_two_categoricalindex_series(self): + # GH 14600 + s1 = Series([39, 6, 4], index=CategoricalIndex(["female", "male", "unknown"])) + s2 = Series( + [2, 152, 2, 242, 150], + index=CategoricalIndex(["f", "female", "m", "male", "unknown"]), + ) + result = DataFrame([s1, s2]) + expected = DataFrame( + np.array([[39, 6, 4, np.nan, np.nan], [152.0, 242.0, 150.0, 2.0, 2.0]]), + columns=["female", "male", "unknown", "f", "m"], + ) + tm.assert_frame_equal(result, expected) + + @pytest.mark.filterwarnings( + "ignore:invalid value encountered in cast:RuntimeWarning" + ) + def test_constructor_series_nonexact_categoricalindex(self): + # GH 42424 + ser = Series(range(100)) + ser1 = cut(ser, 10).value_counts().head(5) + ser2 = cut(ser, 10).value_counts().tail(5) + result = DataFrame({"1": ser1, "2": ser2}) + index = CategoricalIndex( + [ + Interval(-0.099, 9.9, closed="right"), + Interval(9.9, 19.8, closed="right"), + Interval(19.8, 29.7, closed="right"), + Interval(29.7, 39.6, closed="right"), + Interval(39.6, 49.5, closed="right"), + Interval(49.5, 59.4, closed="right"), + Interval(59.4, 69.3, closed="right"), + Interval(69.3, 79.2, closed="right"), + Interval(79.2, 89.1, closed="right"), + Interval(89.1, 99, closed="right"), + ], + ordered=True, + ) + expected = DataFrame( + {"1": [10] * 5 + [np.nan] * 5, "2": [np.nan] * 5 + [10] * 5}, index=index + ) + tm.assert_frame_equal(expected, result) + + def test_from_M8_structured(self): + dates = [(datetime(2012, 9, 9, 0, 0), datetime(2012, 9, 8, 15, 10))] + arr = np.array(dates, dtype=[("Date", "M8[us]"), ("Forecasting", "M8[us]")]) + df = DataFrame(arr) + + assert df["Date"][0] == dates[0][0] + assert df["Forecasting"][0] == dates[0][1] + + s = Series(arr["Date"]) + assert isinstance(s[0], Timestamp) + assert s[0] == dates[0][0] + + def test_from_datetime_subclass(self): + # GH21142 Verify whether Datetime subclasses are also of dtype datetime + class DatetimeSubclass(datetime): + pass + + data = DataFrame({"datetime": [DatetimeSubclass(2020, 1, 1, 1, 1)]}) + assert data.datetime.dtype == "datetime64[ns]" + + def test_with_mismatched_index_length_raises(self): + # GH#33437 + dti = date_range("2016-01-01", periods=3, tz="US/Pacific") + msg = "Shape of passed values|Passed arrays should have the same length" + with pytest.raises(ValueError, match=msg): + DataFrame(dti, index=range(4)) + + def test_frame_ctor_datetime64_column(self): + rng = date_range("1/1/2000 00:00:00", "1/1/2000 1:59:50", freq="10s") + dates = np.asarray(rng) + + df = DataFrame( + {"A": np.random.default_rng(2).standard_normal(len(rng)), "B": dates} + ) + assert np.issubdtype(df["B"].dtype, np.dtype("M8[ns]")) + + def test_dataframe_constructor_infer_multiindex(self): + index_lists = [["a", "a", "b", "b"], ["x", "y", "x", "y"]] + + multi = DataFrame( + np.random.default_rng(2).standard_normal((4, 4)), + index=[np.array(x) for x in index_lists], + ) + assert isinstance(multi.index, MultiIndex) + assert not isinstance(multi.columns, MultiIndex) + + multi = DataFrame( + np.random.default_rng(2).standard_normal((4, 4)), columns=index_lists + ) + assert isinstance(multi.columns, MultiIndex) + + @pytest.mark.parametrize( + "input_vals", + [ + ([1, 2]), + (["1", "2"]), + (list(date_range("1/1/2011", periods=2, freq="h"))), + (list(date_range("1/1/2011", periods=2, freq="h", tz="US/Eastern"))), + ([Interval(left=0, right=5)]), + ], + ) + def test_constructor_list_str(self, input_vals, string_dtype): + # GH#16605 + # Ensure that data elements are converted to strings when + # dtype is str, 'str', or 'U' + + result = DataFrame({"A": input_vals}, dtype=string_dtype) + expected = DataFrame({"A": input_vals}).astype({"A": string_dtype}) + tm.assert_frame_equal(result, expected) + + def test_constructor_list_str_na(self, string_dtype): + result = DataFrame({"A": [1.0, 2.0, None]}, dtype=string_dtype) + expected = DataFrame({"A": ["1.0", "2.0", None]}, dtype=object) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("copy", [False, True]) + def test_dict_nocopy( + self, + request, + copy, + any_numeric_ea_dtype, + any_numpy_dtype, + using_array_manager, + using_copy_on_write, + ): + if ( + using_array_manager + and not copy + and any_numpy_dtype not in tm.STRING_DTYPES + tm.BYTES_DTYPES + ): + # TODO(ArrayManager) properly honor copy keyword for dict input + td.mark_array_manager_not_yet_implemented(request) + + a = np.array([1, 2], dtype=any_numpy_dtype) + b = np.array([3, 4], dtype=any_numpy_dtype) + if b.dtype.kind in ["S", "U"]: + # These get cast, making the checks below more cumbersome + pytest.skip(f"{b.dtype} get cast, making the checks below more cumbersome") + + c = pd.array([1, 2], dtype=any_numeric_ea_dtype) + c_orig = c.copy() + df = DataFrame({"a": a, "b": b, "c": c}, copy=copy) + + def get_base(obj): + if isinstance(obj, np.ndarray): + return obj.base + elif isinstance(obj.dtype, np.dtype): + # i.e. DatetimeArray, TimedeltaArray + return obj._ndarray.base + else: + raise TypeError + + def check_views(c_only: bool = False): + # written to work for either BlockManager or ArrayManager + + # Check that the underlying data behind df["c"] is still `c` + # after setting with iloc. Since we don't know which entry in + # df._mgr.arrays corresponds to df["c"], we just check that exactly + # one of these arrays is `c`. GH#38939 + assert sum(x is c for x in df._mgr.arrays) == 1 + if c_only: + # If we ever stop consolidating in setitem_with_indexer, + # this will become unnecessary. + return + + assert ( + sum( + get_base(x) is a + for x in df._mgr.arrays + if isinstance(x.dtype, np.dtype) + ) + == 1 + ) + assert ( + sum( + get_base(x) is b + for x in df._mgr.arrays + if isinstance(x.dtype, np.dtype) + ) + == 1 + ) + + if not copy: + # constructor preserves views + check_views() + + # TODO: most of the rest of this test belongs in indexing tests + if lib.is_np_dtype(df.dtypes.iloc[0], "fciuO"): + warn = None + else: + warn = FutureWarning + with tm.assert_produces_warning(warn, match="incompatible dtype"): + df.iloc[0, 0] = 0 + df.iloc[0, 1] = 0 + if not copy: + check_views(True) + + # FIXME(GH#35417): until GH#35417, iloc.setitem into EA values does not preserve + # view, so we have to check in the other direction + df.iloc[:, 2] = pd.array([45, 46], dtype=c.dtype) + assert df.dtypes.iloc[2] == c.dtype + if not copy and not using_copy_on_write: + check_views(True) + + if copy: + if a.dtype.kind == "M": + assert a[0] == a.dtype.type(1, "ns") + assert b[0] == b.dtype.type(3, "ns") + else: + assert a[0] == a.dtype.type(1) + assert b[0] == b.dtype.type(3) + # FIXME(GH#35417): enable after GH#35417 + assert c[0] == c_orig[0] # i.e. df.iloc[0, 2]=45 did *not* update c + elif not using_copy_on_write: + # TODO: we can call check_views if we stop consolidating + # in setitem_with_indexer + assert c[0] == 45 # i.e. df.iloc[0, 2]=45 *did* update c + # TODO: we can check b[0] == 0 if we stop consolidating in + # setitem_with_indexer (except for datetimelike?) + + def test_construct_from_dict_ea_series(self): + # GH#53744 - default of copy=True should also apply for Series with + # extension dtype + ser = Series([1, 2, 3], dtype="Int64") + df = DataFrame({"a": ser}) + assert not np.shares_memory(ser.values._data, df["a"].values._data) + + def test_from_series_with_name_with_columns(self): + # GH 7893 + result = DataFrame(Series(1, name="foo"), columns=["bar"]) + expected = DataFrame(columns=["bar"]) + tm.assert_frame_equal(result, expected) + + def test_nested_list_columns(self): + # GH 14467 + result = DataFrame( + [[1, 2, 3], [4, 5, 6]], columns=[["A", "A", "A"], ["a", "b", "c"]] + ) + expected = DataFrame( + [[1, 2, 3], [4, 5, 6]], + columns=MultiIndex.from_tuples([("A", "a"), ("A", "b"), ("A", "c")]), + ) + tm.assert_frame_equal(result, expected) + + def test_from_2d_object_array_of_periods_or_intervals(self): + # Period analogue to GH#26825 + pi = pd.period_range("2016-04-05", periods=3) + data = pi._data.astype(object).reshape(1, -1) + df = DataFrame(data) + assert df.shape == (1, 3) + assert (df.dtypes == pi.dtype).all() + assert (df == pi).all().all() + + ii = pd.IntervalIndex.from_breaks([3, 4, 5, 6]) + data2 = ii._data.astype(object).reshape(1, -1) + df2 = DataFrame(data2) + assert df2.shape == (1, 3) + assert (df2.dtypes == ii.dtype).all() + assert (df2 == ii).all().all() + + # mixed + data3 = np.r_[data, data2, data, data2].T + df3 = DataFrame(data3) + expected = DataFrame({0: pi, 1: ii, 2: pi, 3: ii}) + tm.assert_frame_equal(df3, expected) + + @pytest.mark.parametrize( + "col_a, col_b", + [ + ([[1], [2]], np.array([[1], [2]])), + (np.array([[1], [2]]), [[1], [2]]), + (np.array([[1], [2]]), np.array([[1], [2]])), + ], + ) + def test_error_from_2darray(self, col_a, col_b): + msg = "Per-column arrays must each be 1-dimensional" + with pytest.raises(ValueError, match=msg): + DataFrame({"a": col_a, "b": col_b}) + + def test_from_dict_with_missing_copy_false(self): + # GH#45369 filled columns should not be views of one another + df = DataFrame(index=[1, 2, 3], columns=["a", "b", "c"], copy=False) + assert not np.shares_memory(df["a"]._values, df["b"]._values) + + df.iloc[0, 0] = 0 + expected = DataFrame( + { + "a": [0, np.nan, np.nan], + "b": [np.nan, np.nan, np.nan], + "c": [np.nan, np.nan, np.nan], + }, + index=[1, 2, 3], + dtype=object, + ) + tm.assert_frame_equal(df, expected) + + def test_construction_empty_array_multi_column_raises(self): + # GH#46822 + msg = r"Shape of passed values is \(0, 1\), indices imply \(0, 2\)" + with pytest.raises(ValueError, match=msg): + DataFrame(data=np.array([]), columns=["a", "b"]) + + def test_construct_with_strings_and_none(self): + # GH#32218 + df = DataFrame(["1", "2", None], columns=["a"], dtype="str") + expected = DataFrame({"a": ["1", "2", None]}, dtype="str") + tm.assert_frame_equal(df, expected) + + def test_frame_string_inference(self): + # GH#54430 + dtype = pd.StringDtype(na_value=np.nan) + expected = DataFrame( + {"a": ["a", "b"]}, dtype=dtype, columns=Index(["a"], dtype=dtype) + ) + with pd.option_context("future.infer_string", True): + df = DataFrame({"a": ["a", "b"]}) + tm.assert_frame_equal(df, expected) + + expected = DataFrame( + {"a": ["a", "b"]}, + dtype=dtype, + columns=Index(["a"], dtype=dtype), + index=Index(["x", "y"], dtype=dtype), + ) + with pd.option_context("future.infer_string", True): + df = DataFrame({"a": ["a", "b"]}, index=["x", "y"]) + tm.assert_frame_equal(df, expected) + + expected = DataFrame( + {"a": ["a", 1]}, dtype="object", columns=Index(["a"], dtype=dtype) + ) + with pd.option_context("future.infer_string", True): + df = DataFrame({"a": ["a", 1]}) + tm.assert_frame_equal(df, expected) + + expected = DataFrame( + {"a": ["a", "b"]}, dtype="object", columns=Index(["a"], dtype=dtype) + ) + with pd.option_context("future.infer_string", True): + df = DataFrame({"a": ["a", "b"]}, dtype="object") + tm.assert_frame_equal(df, expected) + + def test_frame_string_inference_array_string_dtype(self): + # GH#54496 + dtype = pd.StringDtype(na_value=np.nan) + expected = DataFrame( + {"a": ["a", "b"]}, dtype=dtype, columns=Index(["a"], dtype=dtype) + ) + with pd.option_context("future.infer_string", True): + df = DataFrame({"a": np.array(["a", "b"])}) + tm.assert_frame_equal(df, expected) + + expected = DataFrame({0: ["a", "b"], 1: ["c", "d"]}, dtype=dtype) + with pd.option_context("future.infer_string", True): + df = DataFrame(np.array([["a", "c"], ["b", "d"]])) + tm.assert_frame_equal(df, expected) + + expected = DataFrame( + {"a": ["a", "b"], "b": ["c", "d"]}, + dtype=dtype, + columns=Index(["a", "b"], dtype=dtype), + ) + with pd.option_context("future.infer_string", True): + df = DataFrame(np.array([["a", "c"], ["b", "d"]]), columns=["a", "b"]) + tm.assert_frame_equal(df, expected) + + def test_frame_string_inference_block_dim(self): + # GH#55363 + with pd.option_context("future.infer_string", True): + df = DataFrame(np.array([["hello", "goodbye"], ["hello", "Hello"]])) + assert df._mgr.blocks[0].ndim == 2 + + def test_inference_on_pandas_objects(self): + # GH#56012 + idx = Index([Timestamp("2019-12-31")], dtype=object) + with tm.assert_produces_warning(FutureWarning, match="Dtype inference"): + result = DataFrame(idx, columns=["a"]) + assert result.dtypes.iloc[0] != np.object_ + result = DataFrame({"a": idx}) + assert result.dtypes.iloc[0] == np.object_ + + ser = Series([Timestamp("2019-12-31")], dtype=object) + + with tm.assert_produces_warning(FutureWarning, match="Dtype inference"): + result = DataFrame(ser, columns=["a"]) + assert result.dtypes.iloc[0] != np.object_ + result = DataFrame({"a": ser}) + assert result.dtypes.iloc[0] == np.object_ + + +class TestDataFrameConstructorIndexInference: + def test_frame_from_dict_of_series_overlapping_monthly_period_indexes(self): + rng1 = pd.period_range("1/1/1999", "1/1/2012", freq="M") + s1 = Series(np.random.default_rng(2).standard_normal(len(rng1)), rng1) + + rng2 = pd.period_range("1/1/1980", "12/1/2001", freq="M") + s2 = Series(np.random.default_rng(2).standard_normal(len(rng2)), rng2) + df = DataFrame({"s1": s1, "s2": s2}) + + exp = pd.period_range("1/1/1980", "1/1/2012", freq="M") + tm.assert_index_equal(df.index, exp) + + def test_frame_from_dict_with_mixed_tzaware_indexes(self): + # GH#44091 + dti = date_range("2016-01-01", periods=3) + + ser1 = Series(range(3), index=dti) + ser2 = Series(range(3), index=dti.tz_localize("UTC")) + ser3 = Series(range(3), index=dti.tz_localize("US/Central")) + ser4 = Series(range(3)) + + # no tz-naive, but we do have mixed tzs and a non-DTI + df1 = DataFrame({"A": ser2, "B": ser3, "C": ser4}) + exp_index = Index( + list(ser2.index) + list(ser3.index) + list(ser4.index), dtype=object + ) + tm.assert_index_equal(df1.index, exp_index) + + df2 = DataFrame({"A": ser2, "C": ser4, "B": ser3}) + exp_index3 = Index( + list(ser2.index) + list(ser4.index) + list(ser3.index), dtype=object + ) + tm.assert_index_equal(df2.index, exp_index3) + + df3 = DataFrame({"B": ser3, "A": ser2, "C": ser4}) + exp_index3 = Index( + list(ser3.index) + list(ser2.index) + list(ser4.index), dtype=object + ) + tm.assert_index_equal(df3.index, exp_index3) + + df4 = DataFrame({"C": ser4, "B": ser3, "A": ser2}) + exp_index4 = Index( + list(ser4.index) + list(ser3.index) + list(ser2.index), dtype=object + ) + tm.assert_index_equal(df4.index, exp_index4) + + # TODO: not clear if these raising is desired (no extant tests), + # but this is de facto behavior 2021-12-22 + msg = "Cannot join tz-naive with tz-aware DatetimeIndex" + with pytest.raises(TypeError, match=msg): + DataFrame({"A": ser2, "B": ser3, "C": ser4, "D": ser1}) + with pytest.raises(TypeError, match=msg): + DataFrame({"A": ser2, "B": ser3, "D": ser1}) + with pytest.raises(TypeError, match=msg): + DataFrame({"D": ser1, "A": ser2, "B": ser3}) + + @pytest.mark.parametrize( + "key_val, col_vals, col_type", + [ + ["3", ["3", "4"], "utf8"], + [3, [3, 4], "int8"], + ], + ) + def test_dict_data_arrow_column_expansion(self, key_val, col_vals, col_type): + # GH 53617 + pa = pytest.importorskip("pyarrow") + cols = pd.arrays.ArrowExtensionArray( + pa.array(col_vals, type=pa.dictionary(pa.int8(), getattr(pa, col_type)())) + ) + result = DataFrame({key_val: [1, 2]}, columns=cols) + expected = DataFrame([[1, np.nan], [2, np.nan]], columns=cols) + expected.isetitem(1, expected.iloc[:, 1].astype(object)) + tm.assert_frame_equal(result, expected) + + +class TestDataFrameConstructorWithDtypeCoercion: + def test_floating_values_integer_dtype(self): + # GH#40110 make DataFrame behavior with arraylike floating data and + # inty dtype match Series behavior + + arr = np.random.default_rng(2).standard_normal((10, 5)) + + # GH#49599 in 2.0 we raise instead of either + # a) silently ignoring dtype and returningfloat (the old Series behavior) or + # b) rounding (the old DataFrame behavior) + msg = "Trying to coerce float values to integers" + with pytest.raises(ValueError, match=msg): + DataFrame(arr, dtype="i8") + + df = DataFrame(arr.round(), dtype="i8") + assert (df.dtypes == "i8").all() + + # with NaNs, we go through a different path with a different warning + arr[0, 0] = np.nan + msg = r"Cannot convert non-finite values \(NA or inf\) to integer" + with pytest.raises(IntCastingNaNError, match=msg): + DataFrame(arr, dtype="i8") + with pytest.raises(IntCastingNaNError, match=msg): + Series(arr[0], dtype="i8") + # The future (raising) behavior matches what we would get via astype: + msg = r"Cannot convert non-finite values \(NA or inf\) to integer" + with pytest.raises(IntCastingNaNError, match=msg): + DataFrame(arr).astype("i8") + with pytest.raises(IntCastingNaNError, match=msg): + Series(arr[0]).astype("i8") + + +class TestDataFrameConstructorWithDatetimeTZ: + @pytest.mark.parametrize("tz", ["US/Eastern", "dateutil/US/Eastern"]) + def test_construction_preserves_tzaware_dtypes(self, tz): + # after GH#7822 + # these retain the timezones on dict construction + dr = date_range("2011/1/1", "2012/1/1", freq="W-FRI") + dr_tz = dr.tz_localize(tz) + df = DataFrame({"A": "foo", "B": dr_tz}, index=dr) + tz_expected = DatetimeTZDtype("ns", dr_tz.tzinfo) + assert df["B"].dtype == tz_expected + + # GH#2810 (with timezones) + datetimes_naive = [ts.to_pydatetime() for ts in dr] + datetimes_with_tz = [ts.to_pydatetime() for ts in dr_tz] + df = DataFrame({"dr": dr}) + df["dr_tz"] = dr_tz + df["datetimes_naive"] = datetimes_naive + df["datetimes_with_tz"] = datetimes_with_tz + result = df.dtypes + expected = Series( + [ + np.dtype("datetime64[ns]"), + DatetimeTZDtype(tz=tz), + np.dtype("datetime64[ns]"), + DatetimeTZDtype(tz=tz), + ], + index=["dr", "dr_tz", "datetimes_naive", "datetimes_with_tz"], + ) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("pydt", [True, False]) + def test_constructor_data_aware_dtype_naive(self, tz_aware_fixture, pydt): + # GH#25843, GH#41555, GH#33401 + tz = tz_aware_fixture + ts = Timestamp("2019", tz=tz) + if pydt: + ts = ts.to_pydatetime() + + msg = ( + "Cannot convert timezone-aware data to timezone-naive dtype. " + r"Use pd.Series\(values\).dt.tz_localize\(None\) instead." + ) + with pytest.raises(ValueError, match=msg): + DataFrame({0: [ts]}, dtype="datetime64[ns]") + + msg2 = "Cannot unbox tzaware Timestamp to tznaive dtype" + with pytest.raises(TypeError, match=msg2): + DataFrame({0: ts}, index=[0], dtype="datetime64[ns]") + + with pytest.raises(ValueError, match=msg): + DataFrame([ts], dtype="datetime64[ns]") + + with pytest.raises(ValueError, match=msg): + DataFrame(np.array([ts], dtype=object), dtype="datetime64[ns]") + + with pytest.raises(TypeError, match=msg2): + DataFrame(ts, index=[0], columns=[0], dtype="datetime64[ns]") + + with pytest.raises(ValueError, match=msg): + DataFrame([Series([ts])], dtype="datetime64[ns]") + + with pytest.raises(ValueError, match=msg): + DataFrame([[ts]], columns=[0], dtype="datetime64[ns]") + + def test_from_dict(self): + # 8260 + # support datetime64 with tz + + idx = Index(date_range("20130101", periods=3, tz="US/Eastern"), name="foo") + dr = date_range("20130110", periods=3) + + # construction + df = DataFrame({"A": idx, "B": dr}) + assert df["A"].dtype, "M8[ns, US/Eastern" + assert df["A"].name == "A" + tm.assert_series_equal(df["A"], Series(idx, name="A")) + tm.assert_series_equal(df["B"], Series(dr, name="B")) + + def test_from_index(self): + # from index + idx2 = date_range("20130101", periods=3, tz="US/Eastern", name="foo") + df2 = DataFrame(idx2) + tm.assert_series_equal(df2["foo"], Series(idx2, name="foo")) + df2 = DataFrame(Series(idx2)) + tm.assert_series_equal(df2["foo"], Series(idx2, name="foo")) + + idx2 = date_range("20130101", periods=3, tz="US/Eastern") + df2 = DataFrame(idx2) + tm.assert_series_equal(df2[0], Series(idx2, name=0)) + df2 = DataFrame(Series(idx2)) + tm.assert_series_equal(df2[0], Series(idx2, name=0)) + + def test_frame_dict_constructor_datetime64_1680(self): + dr = date_range("1/1/2012", periods=10) + s = Series(dr, index=dr) + + # it works! + DataFrame({"a": "foo", "b": s}, index=dr) + DataFrame({"a": "foo", "b": s.values}, index=dr) + + def test_frame_datetime64_mixed_index_ctor_1681(self): + dr = date_range("2011/1/1", "2012/1/1", freq="W-FRI") + ts = Series(dr) + + # it works! + d = DataFrame({"A": "foo", "B": ts}, index=dr) + assert d["B"].isna().all() + + def test_frame_timeseries_column(self): + # GH19157 + dr = date_range( + start="20130101T10:00:00", periods=3, freq="min", tz="US/Eastern" + ) + result = DataFrame(dr, columns=["timestamps"]) + expected = DataFrame( + { + "timestamps": [ + Timestamp("20130101T10:00:00", tz="US/Eastern"), + Timestamp("20130101T10:01:00", tz="US/Eastern"), + Timestamp("20130101T10:02:00", tz="US/Eastern"), + ] + } + ) + tm.assert_frame_equal(result, expected) + + def test_nested_dict_construction(self): + # GH22227 + columns = ["Nevada", "Ohio"] + pop = { + "Nevada": {2001: 2.4, 2002: 2.9}, + "Ohio": {2000: 1.5, 2001: 1.7, 2002: 3.6}, + } + result = DataFrame(pop, index=[2001, 2002, 2003], columns=columns) + expected = DataFrame( + [(2.4, 1.7), (2.9, 3.6), (np.nan, np.nan)], + columns=columns, + index=Index([2001, 2002, 2003]), + ) + tm.assert_frame_equal(result, expected) + + def test_from_tzaware_object_array(self): + # GH#26825 2D object array of tzaware timestamps should not raise + dti = date_range("2016-04-05 04:30", periods=3, tz="UTC") + data = dti._data.astype(object).reshape(1, -1) + df = DataFrame(data) + assert df.shape == (1, 3) + assert (df.dtypes == dti.dtype).all() + assert (df == dti).all().all() + + def test_from_tzaware_mixed_object_array(self): + # GH#26825 + arr = np.array( + [ + [ + Timestamp("2013-01-01 00:00:00"), + Timestamp("2013-01-02 00:00:00"), + Timestamp("2013-01-03 00:00:00"), + ], + [ + Timestamp("2013-01-01 00:00:00-0500", tz="US/Eastern"), + pd.NaT, + Timestamp("2013-01-03 00:00:00-0500", tz="US/Eastern"), + ], + [ + Timestamp("2013-01-01 00:00:00+0100", tz="CET"), + pd.NaT, + Timestamp("2013-01-03 00:00:00+0100", tz="CET"), + ], + ], + dtype=object, + ).T + res = DataFrame(arr, columns=["A", "B", "C"]) + + expected_dtypes = [ + "datetime64[ns]", + "datetime64[ns, US/Eastern]", + "datetime64[ns, CET]", + ] + assert (res.dtypes == expected_dtypes).all() + + def test_from_2d_ndarray_with_dtype(self): + # GH#12513 + array_dim2 = np.arange(10).reshape((5, 2)) + df = DataFrame(array_dim2, dtype="datetime64[ns, UTC]") + + expected = DataFrame(array_dim2).astype("datetime64[ns, UTC]") + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize("typ", [set, frozenset]) + def test_construction_from_set_raises(self, typ): + # https://github.com/pandas-dev/pandas/issues/32582 + values = typ({1, 2, 3}) + msg = f"'{typ.__name__}' type is unordered" + with pytest.raises(TypeError, match=msg): + DataFrame({"a": values}) + + with pytest.raises(TypeError, match=msg): + Series(values) + + def test_construction_from_ndarray_datetimelike(self): + # ensure the underlying arrays are properly wrapped as EA when + # constructed from 2D ndarray + arr = np.arange(0, 12, dtype="datetime64[ns]").reshape(4, 3) + df = DataFrame(arr) + assert all(isinstance(arr, DatetimeArray) for arr in df._mgr.arrays) + + def test_construction_from_ndarray_with_eadtype_mismatched_columns(self): + arr = np.random.default_rng(2).standard_normal((10, 2)) + dtype = pd.array([2.0]).dtype + msg = r"len\(arrays\) must match len\(columns\)" + with pytest.raises(ValueError, match=msg): + DataFrame(arr, columns=["foo"], dtype=dtype) + + arr2 = pd.array([2.0, 3.0, 4.0]) + with pytest.raises(ValueError, match=msg): + DataFrame(arr2, columns=["foo", "bar"]) + + def test_columns_indexes_raise_on_sets(self): + # GH 47215 + data = [[1, 2, 3], [4, 5, 6]] + with pytest.raises(ValueError, match="index cannot be a set"): + DataFrame(data, index={"a", "b"}) + with pytest.raises(ValueError, match="columns cannot be a set"): + DataFrame(data, columns={"a", "b", "c"}) + + # TODO: make this not cast to object in pandas 3.0 + @pytest.mark.skipif( + not np_version_gt2, reason="StringDType only available in numpy 2 and above" + ) + @pytest.mark.parametrize( + "data", + [ + {"a": ["a", "b", "c"], "b": [1.0, 2.0, 3.0], "c": ["d", "e", "f"]}, + ], + ) + def test_np_string_array_object_cast(self, data): + from numpy.dtypes import StringDType + + data["a"] = np.array(data["a"], dtype=StringDType()) + res = DataFrame(data) + assert res["a"].dtype == np.object_ + assert (res["a"] == data["a"]).all() + + +def get1(obj): # TODO: make a helper in tm? + if isinstance(obj, Series): + return obj.iloc[0] + else: + return obj.iloc[0, 0] + + +class TestFromScalar: + @pytest.fixture(params=[list, dict, None]) + def box(self, request): + return request.param + + @pytest.fixture + def constructor(self, frame_or_series, box): + extra = {"index": range(2)} + if frame_or_series is DataFrame: + extra["columns"] = ["A"] + + if box is None: + return functools.partial(frame_or_series, **extra) + + elif box is dict: + if frame_or_series is Series: + return lambda x, **kwargs: frame_or_series( + {0: x, 1: x}, **extra, **kwargs + ) + else: + return lambda x, **kwargs: frame_or_series({"A": x}, **extra, **kwargs) + elif frame_or_series is Series: + return lambda x, **kwargs: frame_or_series([x, x], **extra, **kwargs) + else: + return lambda x, **kwargs: frame_or_series({"A": [x, x]}, **extra, **kwargs) + + @pytest.mark.parametrize("dtype", ["M8[ns]", "m8[ns]"]) + def test_from_nat_scalar(self, dtype, constructor): + obj = constructor(pd.NaT, dtype=dtype) + assert np.all(obj.dtypes == dtype) + assert np.all(obj.isna()) + + def test_from_timedelta_scalar_preserves_nanos(self, constructor): + td = Timedelta(1) + + obj = constructor(td, dtype="m8[ns]") + assert get1(obj) == td + + def test_from_timestamp_scalar_preserves_nanos(self, constructor, fixed_now_ts): + ts = fixed_now_ts + Timedelta(1) + + obj = constructor(ts, dtype="M8[ns]") + assert get1(obj) == ts + + def test_from_timedelta64_scalar_object(self, constructor): + td = Timedelta(1) + td64 = td.to_timedelta64() + + obj = constructor(td64, dtype=object) + assert isinstance(get1(obj), np.timedelta64) + + @pytest.mark.parametrize("cls", [np.datetime64, np.timedelta64]) + def test_from_scalar_datetimelike_mismatched(self, constructor, cls): + scalar = cls("NaT", "ns") + dtype = {np.datetime64: "m8[ns]", np.timedelta64: "M8[ns]"}[cls] + + if cls is np.datetime64: + msg1 = "Invalid type for timedelta scalar: " + else: + msg1 = " is not convertible to datetime" + msg = "|".join(["Cannot cast", msg1]) + + with pytest.raises(TypeError, match=msg): + constructor(scalar, dtype=dtype) + + scalar = cls(4, "ns") + with pytest.raises(TypeError, match=msg): + constructor(scalar, dtype=dtype) + + @pytest.mark.parametrize("cls", [datetime, np.datetime64]) + def test_from_out_of_bounds_ns_datetime( + self, constructor, cls, request, box, frame_or_series + ): + # scalar that won't fit in nanosecond dt64, but will fit in microsecond + if box is list or (frame_or_series is Series and box is dict): + mark = pytest.mark.xfail( + reason="Timestamp constructor has been updated to cast dt64 to " + "non-nano, but DatetimeArray._from_sequence has not", + strict=True, + ) + request.applymarker(mark) + + scalar = datetime(9999, 1, 1) + exp_dtype = "M8[us]" # pydatetime objects default to this reso + + if cls is np.datetime64: + scalar = np.datetime64(scalar, "D") + exp_dtype = "M8[s]" # closest reso to input + result = constructor(scalar) + + item = get1(result) + dtype = tm.get_dtype(result) + + assert type(item) is Timestamp + assert item.asm8.dtype == exp_dtype + assert dtype == exp_dtype + + @pytest.mark.skip_ubsan + def test_out_of_s_bounds_datetime64(self, constructor): + scalar = np.datetime64(np.iinfo(np.int64).max, "D") + result = constructor(scalar) + item = get1(result) + assert type(item) is np.datetime64 + dtype = tm.get_dtype(result) + assert dtype == object + + @pytest.mark.parametrize("cls", [timedelta, np.timedelta64]) + def test_from_out_of_bounds_ns_timedelta( + self, constructor, cls, request, box, frame_or_series + ): + # scalar that won't fit in nanosecond td64, but will fit in microsecond + if box is list or (frame_or_series is Series and box is dict): + mark = pytest.mark.xfail( + reason="TimedeltaArray constructor has been updated to cast td64 " + "to non-nano, but TimedeltaArray._from_sequence has not", + strict=True, + ) + request.applymarker(mark) + + scalar = datetime(9999, 1, 1) - datetime(1970, 1, 1) + exp_dtype = "m8[us]" # smallest reso that fits + if cls is np.timedelta64: + scalar = np.timedelta64(scalar, "D") + exp_dtype = "m8[s]" # closest reso to input + result = constructor(scalar) + + item = get1(result) + dtype = tm.get_dtype(result) + + assert type(item) is Timedelta + assert item.asm8.dtype == exp_dtype + assert dtype == exp_dtype + + @pytest.mark.skip_ubsan + @pytest.mark.parametrize("cls", [np.datetime64, np.timedelta64]) + def test_out_of_s_bounds_timedelta64(self, constructor, cls): + scalar = cls(np.iinfo(np.int64).max, "D") + result = constructor(scalar) + item = get1(result) + assert type(item) is cls + dtype = tm.get_dtype(result) + assert dtype == object + + def test_tzaware_data_tznaive_dtype(self, constructor, box, frame_or_series): + tz = "US/Eastern" + ts = Timestamp("2019", tz=tz) + + if box is None or (frame_or_series is DataFrame and box is dict): + msg = "Cannot unbox tzaware Timestamp to tznaive dtype" + err = TypeError + else: + msg = ( + "Cannot convert timezone-aware data to timezone-naive dtype. " + r"Use pd.Series\(values\).dt.tz_localize\(None\) instead." + ) + err = ValueError + + with pytest.raises(err, match=msg): + constructor(ts, dtype="M8[ns]") + + +# TODO: better location for this test? +class TestAllowNonNano: + # Until 2.0, we do not preserve non-nano dt64/td64 when passed as ndarray, + # but do preserve it when passed as DTA/TDA + + @pytest.fixture(params=[True, False]) + def as_td(self, request): + return request.param + + @pytest.fixture + def arr(self, as_td): + values = np.arange(5).astype(np.int64).view("M8[s]") + if as_td: + values = values - values[0] + return TimedeltaArray._simple_new(values, dtype=values.dtype) + else: + return DatetimeArray._simple_new(values, dtype=values.dtype) + + def test_index_allow_non_nano(self, arr): + idx = Index(arr) + assert idx.dtype == arr.dtype + + def test_dti_tdi_allow_non_nano(self, arr, as_td): + if as_td: + idx = pd.TimedeltaIndex(arr) + else: + idx = DatetimeIndex(arr) + assert idx.dtype == arr.dtype + + def test_series_allow_non_nano(self, arr): + ser = Series(arr) + assert ser.dtype == arr.dtype + + def test_frame_allow_non_nano(self, arr): + df = DataFrame(arr) + assert df.dtypes[0] == arr.dtype + + def test_frame_from_dict_allow_non_nano(self, arr): + df = DataFrame({0: arr}) + assert df.dtypes[0] == arr.dtype diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_cumulative.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_cumulative.py new file mode 100644 index 0000000000000000000000000000000000000000..5bd9c426123159fcfcf6bf5289fd08a60dfd91b2 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_cumulative.py @@ -0,0 +1,81 @@ +""" +Tests for DataFrame cumulative operations + +See also +-------- +tests.series.test_cumulative +""" + +import numpy as np +import pytest + +from pandas import ( + DataFrame, + Series, +) +import pandas._testing as tm + + +class TestDataFrameCumulativeOps: + # --------------------------------------------------------------------- + # Cumulative Operations - cumsum, cummax, ... + + def test_cumulative_ops_smoke(self): + # it works + df = DataFrame({"A": np.arange(20)}, index=np.arange(20)) + df.cummax() + df.cummin() + df.cumsum() + + dm = DataFrame(np.arange(20).reshape(4, 5), index=range(4), columns=range(5)) + # TODO(wesm): do something with this? + dm.cumsum() + + def test_cumprod_smoke(self, datetime_frame): + datetime_frame.iloc[5:10, 0] = np.nan + datetime_frame.iloc[10:15, 1] = np.nan + datetime_frame.iloc[15:, 2] = np.nan + + # ints + df = datetime_frame.fillna(0).astype(int) + df.cumprod(0) + df.cumprod(1) + + # ints32 + df = datetime_frame.fillna(0).astype(np.int32) + df.cumprod(0) + df.cumprod(1) + + @pytest.mark.parametrize("method", ["cumsum", "cumprod", "cummin", "cummax"]) + def test_cumulative_ops_match_series_apply(self, datetime_frame, method): + datetime_frame.iloc[5:10, 0] = np.nan + datetime_frame.iloc[10:15, 1] = np.nan + datetime_frame.iloc[15:, 2] = np.nan + + # axis = 0 + result = getattr(datetime_frame, method)() + expected = datetime_frame.apply(getattr(Series, method)) + tm.assert_frame_equal(result, expected) + + # axis = 1 + result = getattr(datetime_frame, method)(axis=1) + expected = datetime_frame.apply(getattr(Series, method), axis=1) + tm.assert_frame_equal(result, expected) + + # fix issue TODO: GH ref? + assert np.shape(result) == np.shape(datetime_frame) + + def test_cumsum_preserve_dtypes(self): + # GH#19296 dont incorrectly upcast to object + df = DataFrame({"A": [1, 2, 3], "B": [1, 2, 3.0], "C": [True, False, False]}) + + result = df.cumsum() + + expected = DataFrame( + { + "A": Series([1, 3, 6], dtype=np.int64), + "B": Series([1, 3, 6], dtype=np.float64), + "C": df["C"].cumsum(), + } + ) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_iteration.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_iteration.py new file mode 100644 index 0000000000000000000000000000000000000000..a1c23ff05f3e19aca490444216ec295453483e80 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_iteration.py @@ -0,0 +1,160 @@ +import datetime + +import numpy as np +import pytest + +from pandas.compat import ( + IS64, + is_platform_windows, +) + +from pandas import ( + Categorical, + DataFrame, + Series, + date_range, +) +import pandas._testing as tm + + +class TestIteration: + def test_keys(self, float_frame): + assert float_frame.keys() is float_frame.columns + + def test_iteritems(self): + df = DataFrame([[1, 2, 3], [4, 5, 6]], columns=["a", "a", "b"]) + for k, v in df.items(): + assert isinstance(v, DataFrame._constructor_sliced) + + def test_items(self): + # GH#17213, GH#13918 + cols = ["a", "b", "c"] + df = DataFrame([[1, 2, 3], [4, 5, 6]], columns=cols) + for c, (k, v) in zip(cols, df.items()): + assert c == k + assert isinstance(v, Series) + assert (df[k] == v).all() + + def test_items_names(self, float_string_frame): + for k, v in float_string_frame.items(): + assert v.name == k + + def test_iter(self, float_frame): + assert list(float_frame) == list(float_frame.columns) + + def test_iterrows(self, float_frame, float_string_frame): + for k, v in float_frame.iterrows(): + exp = float_frame.loc[k] + tm.assert_series_equal(v, exp) + + for k, v in float_string_frame.iterrows(): + exp = float_string_frame.loc[k] + tm.assert_series_equal(v, exp) + + def test_iterrows_iso8601(self): + # GH#19671 + s = DataFrame( + { + "non_iso8601": ["M1701", "M1802", "M1903", "M2004"], + "iso8601": date_range("2000-01-01", periods=4, freq="ME"), + } + ) + for k, v in s.iterrows(): + exp = s.loc[k] + tm.assert_series_equal(v, exp) + + def test_iterrows_corner(self): + # GH#12222 + df = DataFrame( + { + "a": [datetime.datetime(2015, 1, 1)], + "b": [None], + "c": [None], + "d": [""], + "e": [[]], + "f": [set()], + "g": [{}], + } + ) + expected = Series( + [datetime.datetime(2015, 1, 1), None, None, "", [], set(), {}], + index=list("abcdefg"), + name=0, + dtype="object", + ) + _, result = next(df.iterrows()) + tm.assert_series_equal(result, expected) + + def test_itertuples(self, float_frame): + for i, tup in enumerate(float_frame.itertuples()): + ser = DataFrame._constructor_sliced(tup[1:]) + ser.name = tup[0] + expected = float_frame.iloc[i, :].reset_index(drop=True) + tm.assert_series_equal(ser, expected) + + def test_itertuples_index_false(self): + df = DataFrame( + {"floats": np.random.default_rng(2).standard_normal(5), "ints": range(5)}, + columns=["floats", "ints"], + ) + + for tup in df.itertuples(index=False): + assert isinstance(tup[1], int) + + def test_itertuples_duplicate_cols(self): + df = DataFrame(data={"a": [1, 2, 3], "b": [4, 5, 6]}) + dfaa = df[["a", "a"]] + + assert list(dfaa.itertuples()) == [(0, 1, 1), (1, 2, 2), (2, 3, 3)] + + # repr with int on 32-bit/windows + if not (is_platform_windows() or not IS64): + assert ( + repr(list(df.itertuples(name=None))) + == "[(0, 1, 4), (1, 2, 5), (2, 3, 6)]" + ) + + def test_itertuples_tuple_name(self): + df = DataFrame(data={"a": [1, 2, 3], "b": [4, 5, 6]}) + tup = next(df.itertuples(name="TestName")) + assert tup._fields == ("Index", "a", "b") + assert (tup.Index, tup.a, tup.b) == tup + assert type(tup).__name__ == "TestName" + + def test_itertuples_disallowed_col_labels(self): + df = DataFrame(data={"def": [1, 2, 3], "return": [4, 5, 6]}) + tup2 = next(df.itertuples(name="TestName")) + assert tup2 == (0, 1, 4) + assert tup2._fields == ("Index", "_1", "_2") + + @pytest.mark.parametrize("limit", [254, 255, 1024]) + @pytest.mark.parametrize("index", [True, False]) + def test_itertuples_py2_3_field_limit_namedtuple(self, limit, index): + # GH#28282 + df = DataFrame([{f"foo_{i}": f"bar_{i}" for i in range(limit)}]) + result = next(df.itertuples(index=index)) + assert isinstance(result, tuple) + assert hasattr(result, "_fields") + + def test_sequence_like_with_categorical(self): + # GH#7839 + # make sure can iterate + df = DataFrame( + {"id": [1, 2, 3, 4, 5, 6], "raw_grade": ["a", "b", "b", "a", "a", "e"]} + ) + df["grade"] = Categorical(df["raw_grade"]) + + # basic sequencing testing + result = list(df.grade.values) + expected = np.array(df.grade.values).tolist() + tm.assert_almost_equal(result, expected) + + # iteration + for t in df.itertuples(index=False): + str(t) + + for row, s in df.iterrows(): + str(s) + + for c, col in df.items(): + str(col) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_logical_ops.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_logical_ops.py new file mode 100644 index 0000000000000000000000000000000000000000..f1163e994557f8469931c7b5c6833a84abac3a6d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_logical_ops.py @@ -0,0 +1,215 @@ +import operator +import re + +import numpy as np +import pytest + +from pandas import ( + CategoricalIndex, + DataFrame, + Interval, + Series, + isnull, +) +import pandas._testing as tm + + +class TestDataFrameLogicalOperators: + # &, |, ^ + + @pytest.mark.parametrize( + "left, right, op, expected", + [ + ( + [True, False, np.nan], + [True, False, True], + operator.and_, + [True, False, False], + ), + ( + [True, False, True], + [True, False, np.nan], + operator.and_, + [True, False, False], + ), + ( + [True, False, np.nan], + [True, False, True], + operator.or_, + [True, False, False], + ), + ( + [True, False, True], + [True, False, np.nan], + operator.or_, + [True, False, True], + ), + ], + ) + def test_logical_operators_nans(self, left, right, op, expected, frame_or_series): + # GH#13896 + result = op(frame_or_series(left), frame_or_series(right)) + expected = frame_or_series(expected) + + tm.assert_equal(result, expected) + + def test_logical_ops_empty_frame(self): + # GH#5808 + # empty frames, non-mixed dtype + df = DataFrame(index=[1]) + + result = df & df + tm.assert_frame_equal(result, df) + + result = df | df + tm.assert_frame_equal(result, df) + + df2 = DataFrame(index=[1, 2]) + result = df & df2 + tm.assert_frame_equal(result, df2) + + dfa = DataFrame(index=[1], columns=["A"]) + + result = dfa & dfa + expected = DataFrame(False, index=[1], columns=["A"]) + tm.assert_frame_equal(result, expected) + + def test_logical_ops_bool_frame(self): + # GH#5808 + df1a_bool = DataFrame(True, index=[1], columns=["A"]) + + result = df1a_bool & df1a_bool + tm.assert_frame_equal(result, df1a_bool) + + result = df1a_bool | df1a_bool + tm.assert_frame_equal(result, df1a_bool) + + def test_logical_ops_int_frame(self): + # GH#5808 + df1a_int = DataFrame(1, index=[1], columns=["A"]) + df1a_bool = DataFrame(True, index=[1], columns=["A"]) + + result = df1a_int | df1a_bool + tm.assert_frame_equal(result, df1a_bool) + + # Check that this matches Series behavior + res_ser = df1a_int["A"] | df1a_bool["A"] + tm.assert_series_equal(res_ser, df1a_bool["A"]) + + def test_logical_ops_invalid(self, using_infer_string): + # GH#5808 + + df1 = DataFrame(1.0, index=[1], columns=["A"]) + df2 = DataFrame(True, index=[1], columns=["A"]) + msg = re.escape("unsupported operand type(s) for |: 'float' and 'bool'") + with pytest.raises(TypeError, match=msg): + df1 | df2 + + df1 = DataFrame("foo", index=[1], columns=["A"]) + df2 = DataFrame(True, index=[1], columns=["A"]) + if using_infer_string and df1["A"].dtype.storage == "pyarrow": + msg = "operation 'or_' not supported for dtype 'str'" + else: + msg = re.escape("unsupported operand type(s) for |: 'str' and 'bool'") + with pytest.raises(TypeError, match=msg): + df1 | df2 + + def test_logical_operators(self): + def _check_bin_op(op): + result = op(df1, df2) + expected = DataFrame( + op(df1.values, df2.values), index=df1.index, columns=df1.columns + ) + assert result.values.dtype == np.bool_ + tm.assert_frame_equal(result, expected) + + def _check_unary_op(op): + result = op(df1) + expected = DataFrame(op(df1.values), index=df1.index, columns=df1.columns) + assert result.values.dtype == np.bool_ + tm.assert_frame_equal(result, expected) + + df1 = { + "a": {"a": True, "b": False, "c": False, "d": True, "e": True}, + "b": {"a": False, "b": True, "c": False, "d": False, "e": False}, + "c": {"a": False, "b": False, "c": True, "d": False, "e": False}, + "d": {"a": True, "b": False, "c": False, "d": True, "e": True}, + "e": {"a": True, "b": False, "c": False, "d": True, "e": True}, + } + + df2 = { + "a": {"a": True, "b": False, "c": True, "d": False, "e": False}, + "b": {"a": False, "b": True, "c": False, "d": False, "e": False}, + "c": {"a": True, "b": False, "c": True, "d": False, "e": False}, + "d": {"a": False, "b": False, "c": False, "d": True, "e": False}, + "e": {"a": False, "b": False, "c": False, "d": False, "e": True}, + } + + df1 = DataFrame(df1) + df2 = DataFrame(df2) + + _check_bin_op(operator.and_) + _check_bin_op(operator.or_) + _check_bin_op(operator.xor) + + _check_unary_op(operator.inv) # TODO: belongs elsewhere + + @pytest.mark.filterwarnings("ignore:Downcasting object dtype arrays:FutureWarning") + def test_logical_with_nas(self): + d = DataFrame({"a": [np.nan, False], "b": [True, True]}) + + # GH4947 + # bool comparisons should return bool + result = d["a"] | d["b"] + expected = Series([False, True]) + tm.assert_series_equal(result, expected) + + # GH4604, automatic casting here + result = d["a"].fillna(False) | d["b"] + expected = Series([True, True]) + tm.assert_series_equal(result, expected) + + msg = "The 'downcast' keyword in fillna is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = d["a"].fillna(False, downcast=False) | d["b"] + expected = Series([True, True]) + tm.assert_series_equal(result, expected) + + def test_logical_ops_categorical_columns(self): + # GH#38367 + intervals = [Interval(1, 2), Interval(3, 4)] + data = DataFrame( + [[1, np.nan], [2, np.nan]], + columns=CategoricalIndex( + intervals, categories=intervals + [Interval(5, 6)] + ), + ) + mask = DataFrame( + [[False, False], [False, False]], columns=data.columns, dtype=bool + ) + result = mask | isnull(data) + expected = DataFrame( + [[False, True], [False, True]], + columns=CategoricalIndex( + intervals, categories=intervals + [Interval(5, 6)] + ), + ) + tm.assert_frame_equal(result, expected) + + def test_int_dtype_different_index_not_bool(self): + # GH 52500 + df1 = DataFrame([1, 2, 3], index=[10, 11, 23], columns=["a"]) + df2 = DataFrame([10, 20, 30], index=[11, 10, 23], columns=["a"]) + result = np.bitwise_xor(df1, df2) + expected = DataFrame([21, 8, 29], index=[10, 11, 23], columns=["a"]) + tm.assert_frame_equal(result, expected) + + result = df1 ^ df2 + tm.assert_frame_equal(result, expected) + + def test_different_dtypes_different_index_raises(self): + # GH 52538 + df1 = DataFrame([1, 2], index=["a", "b"]) + df2 = DataFrame([3, 4], index=["b", "c"]) + with pytest.raises(TypeError, match="unsupported operand type"): + df1 & df2 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_nonunique_indexes.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_nonunique_indexes.py new file mode 100644 index 0000000000000000000000000000000000000000..34f172e900ab7e16d66afe32aed3d5b87be301c3 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_nonunique_indexes.py @@ -0,0 +1,337 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + DataFrame, + Series, + date_range, +) +import pandas._testing as tm + + +class TestDataFrameNonuniqueIndexes: + def test_setattr_columns_vs_construct_with_columns(self): + # assignment + # GH 3687 + arr = np.random.default_rng(2).standard_normal((3, 2)) + idx = list(range(2)) + df = DataFrame(arr, columns=["A", "A"]) + df.columns = idx + expected = DataFrame(arr, columns=idx) + tm.assert_frame_equal(df, expected) + + def test_setattr_columns_vs_construct_with_columns_datetimeindx(self): + idx = date_range("20130101", periods=4, freq="QE-NOV") + df = DataFrame( + [[1, 1, 1, 5], [1, 1, 2, 5], [2, 1, 3, 5]], columns=["a", "a", "a", "a"] + ) + df.columns = idx + expected = DataFrame([[1, 1, 1, 5], [1, 1, 2, 5], [2, 1, 3, 5]], columns=idx) + tm.assert_frame_equal(df, expected) + + def test_insert_with_duplicate_columns(self): + # insert + df = DataFrame( + [[1, 1, 1, 5], [1, 1, 2, 5], [2, 1, 3, 5]], + columns=["foo", "bar", "foo", "hello"], + ) + df["string"] = "bah" + expected = DataFrame( + [[1, 1, 1, 5, "bah"], [1, 1, 2, 5, "bah"], [2, 1, 3, 5, "bah"]], + columns=["foo", "bar", "foo", "hello", "string"], + ) + tm.assert_frame_equal(df, expected) + with pytest.raises(ValueError, match="Length of value"): + df.insert(0, "AnotherColumn", range(len(df.index) - 1)) + + # insert same dtype + df["foo2"] = 3 + expected = DataFrame( + [[1, 1, 1, 5, "bah", 3], [1, 1, 2, 5, "bah", 3], [2, 1, 3, 5, "bah", 3]], + columns=["foo", "bar", "foo", "hello", "string", "foo2"], + ) + tm.assert_frame_equal(df, expected) + + # set (non-dup) + df["foo2"] = 4 + expected = DataFrame( + [[1, 1, 1, 5, "bah", 4], [1, 1, 2, 5, "bah", 4], [2, 1, 3, 5, "bah", 4]], + columns=["foo", "bar", "foo", "hello", "string", "foo2"], + ) + tm.assert_frame_equal(df, expected) + df["foo2"] = 3 + + # delete (non dup) + del df["bar"] + expected = DataFrame( + [[1, 1, 5, "bah", 3], [1, 2, 5, "bah", 3], [2, 3, 5, "bah", 3]], + columns=["foo", "foo", "hello", "string", "foo2"], + ) + tm.assert_frame_equal(df, expected) + + # try to delete again (its not consolidated) + del df["hello"] + expected = DataFrame( + [[1, 1, "bah", 3], [1, 2, "bah", 3], [2, 3, "bah", 3]], + columns=["foo", "foo", "string", "foo2"], + ) + tm.assert_frame_equal(df, expected) + + # consolidate + df = df._consolidate() + expected = DataFrame( + [[1, 1, "bah", 3], [1, 2, "bah", 3], [2, 3, "bah", 3]], + columns=["foo", "foo", "string", "foo2"], + ) + tm.assert_frame_equal(df, expected) + + # insert + df.insert(2, "new_col", 5.0) + expected = DataFrame( + [[1, 1, 5.0, "bah", 3], [1, 2, 5.0, "bah", 3], [2, 3, 5.0, "bah", 3]], + columns=["foo", "foo", "new_col", "string", "foo2"], + ) + tm.assert_frame_equal(df, expected) + + # insert a dup + with pytest.raises(ValueError, match="cannot insert"): + df.insert(2, "new_col", 4.0) + + df.insert(2, "new_col", 4.0, allow_duplicates=True) + expected = DataFrame( + [ + [1, 1, 4.0, 5.0, "bah", 3], + [1, 2, 4.0, 5.0, "bah", 3], + [2, 3, 4.0, 5.0, "bah", 3], + ], + columns=["foo", "foo", "new_col", "new_col", "string", "foo2"], + ) + tm.assert_frame_equal(df, expected) + + # delete (dup) + del df["foo"] + expected = DataFrame( + [[4.0, 5.0, "bah", 3], [4.0, 5.0, "bah", 3], [4.0, 5.0, "bah", 3]], + columns=["new_col", "new_col", "string", "foo2"], + ) + tm.assert_frame_equal(df, expected) + + def test_dup_across_dtypes(self): + # dup across dtypes + df = DataFrame( + [[1, 1, 1.0, 5], [1, 1, 2.0, 5], [2, 1, 3.0, 5]], + columns=["foo", "bar", "foo", "hello"], + ) + + df["foo2"] = 7.0 + expected = DataFrame( + [[1, 1, 1.0, 5, 7.0], [1, 1, 2.0, 5, 7.0], [2, 1, 3.0, 5, 7.0]], + columns=["foo", "bar", "foo", "hello", "foo2"], + ) + tm.assert_frame_equal(df, expected) + + result = df["foo"] + expected = DataFrame([[1, 1.0], [1, 2.0], [2, 3.0]], columns=["foo", "foo"]) + tm.assert_frame_equal(result, expected) + + # multiple replacements + df["foo"] = "string" + expected = DataFrame( + [ + ["string", 1, "string", 5, 7.0], + ["string", 1, "string", 5, 7.0], + ["string", 1, "string", 5, 7.0], + ], + columns=["foo", "bar", "foo", "hello", "foo2"], + ) + tm.assert_frame_equal(df, expected) + + del df["foo"] + expected = DataFrame( + [[1, 5, 7.0], [1, 5, 7.0], [1, 5, 7.0]], columns=["bar", "hello", "foo2"] + ) + tm.assert_frame_equal(df, expected) + + def test_column_dups_indexes(self): + # check column dups with index equal and not equal to df's index + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 3)), + index=["a", "b", "c", "d", "e"], + columns=["A", "B", "A"], + ) + for index in [df.index, pd.Index(list("edcba"))]: + this_df = df.copy() + expected_ser = Series(index.values, index=this_df.index) + expected_df = DataFrame( + {"A": expected_ser, "B": this_df["B"]}, + columns=["A", "B", "A"], + ) + this_df["A"] = index + tm.assert_frame_equal(this_df, expected_df) + + def test_changing_dtypes_with_duplicate_columns(self): + # multiple assignments that change dtypes + # the location indexer is a slice + # GH 6120 + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 2)), columns=["that", "that"] + ) + expected = DataFrame(1.0, index=range(5), columns=["that", "that"]) + + df["that"] = 1.0 + tm.assert_frame_equal(df, expected) + + df = DataFrame( + np.random.default_rng(2).random((5, 2)), columns=["that", "that"] + ) + expected = DataFrame(1, index=range(5), columns=["that", "that"]) + + df["that"] = 1 + tm.assert_frame_equal(df, expected) + + def test_dup_columns_comparisons(self): + # equality + df1 = DataFrame([[1, 2], [2, np.nan], [3, 4], [4, 4]], columns=["A", "B"]) + df2 = DataFrame([[0, 1], [2, 4], [2, np.nan], [4, 5]], columns=["A", "A"]) + + # not-comparing like-labelled + msg = ( + r"Can only compare identically-labeled \(both index and columns\) " + "DataFrame objects" + ) + with pytest.raises(ValueError, match=msg): + df1 == df2 + + df1r = df1.reindex_like(df2) + result = df1r == df2 + expected = DataFrame( + [[False, True], [True, False], [False, False], [True, False]], + columns=["A", "A"], + ) + tm.assert_frame_equal(result, expected) + + def test_mixed_column_selection(self): + # mixed column selection + # GH 5639 + dfbool = DataFrame( + { + "one": Series([True, True, False], index=["a", "b", "c"]), + "two": Series([False, False, True, False], index=["a", "b", "c", "d"]), + "three": Series([False, True, True, True], index=["a", "b", "c", "d"]), + } + ) + expected = pd.concat([dfbool["one"], dfbool["three"], dfbool["one"]], axis=1) + result = dfbool[["one", "three", "one"]] + tm.assert_frame_equal(result, expected) + + def test_multi_axis_dups(self): + # multi-axis dups + # GH 6121 + df = DataFrame( + np.arange(25.0).reshape(5, 5), + index=["a", "b", "c", "d", "e"], + columns=["A", "B", "C", "D", "E"], + ) + z = df[["A", "C", "A"]].copy() + expected = z.loc[["a", "c", "a"]] + + df = DataFrame( + np.arange(25.0).reshape(5, 5), + index=["a", "b", "c", "d", "e"], + columns=["A", "B", "C", "D", "E"], + ) + z = df[["A", "C", "A"]] + result = z.loc[["a", "c", "a"]] + tm.assert_frame_equal(result, expected) + + def test_columns_with_dups(self): + # GH 3468 related + + # basic + df = DataFrame([[1, 2]], columns=["a", "a"]) + df.columns = ["a", "a.1"] + expected = DataFrame([[1, 2]], columns=["a", "a.1"]) + tm.assert_frame_equal(df, expected) + + df = DataFrame([[1, 2, 3]], columns=["b", "a", "a"]) + df.columns = ["b", "a", "a.1"] + expected = DataFrame([[1, 2, 3]], columns=["b", "a", "a.1"]) + tm.assert_frame_equal(df, expected) + + def test_columns_with_dup_index(self): + # with a dup index + df = DataFrame([[1, 2]], columns=["a", "a"]) + df.columns = ["b", "b"] + expected = DataFrame([[1, 2]], columns=["b", "b"]) + tm.assert_frame_equal(df, expected) + + def test_multi_dtype(self): + # multi-dtype + df = DataFrame( + [[1, 2, 1.0, 2.0, 3.0, "foo", "bar"]], + columns=["a", "a", "b", "b", "d", "c", "c"], + ) + df.columns = list("ABCDEFG") + expected = DataFrame( + [[1, 2, 1.0, 2.0, 3.0, "foo", "bar"]], columns=list("ABCDEFG") + ) + tm.assert_frame_equal(df, expected) + + def test_multi_dtype2(self): + df = DataFrame([[1, 2, "foo", "bar"]], columns=["a", "a", "a", "a"]) + df.columns = ["a", "a.1", "a.2", "a.3"] + expected = DataFrame([[1, 2, "foo", "bar"]], columns=["a", "a.1", "a.2", "a.3"]) + tm.assert_frame_equal(df, expected) + + def test_dups_across_blocks(self, using_array_manager): + # dups across blocks + df_float = DataFrame( + np.random.default_rng(2).standard_normal((10, 3)), dtype="float64" + ) + df_int = DataFrame( + np.random.default_rng(2).standard_normal((10, 3)).astype("int64") + ) + df_bool = DataFrame(True, index=df_float.index, columns=df_float.columns) + df_object = DataFrame("foo", index=df_float.index, columns=df_float.columns) + df_dt = DataFrame( + pd.Timestamp("20010101"), index=df_float.index, columns=df_float.columns + ) + df = pd.concat([df_float, df_int, df_bool, df_object, df_dt], axis=1) + + if not using_array_manager: + assert len(df._mgr.blknos) == len(df.columns) + assert len(df._mgr.blklocs) == len(df.columns) + + # testing iloc + for i in range(len(df.columns)): + df.iloc[:, i] + + def test_dup_columns_across_dtype(self): + # dup columns across dtype GH 2079/2194 + vals = [[1, -1, 2.0], [2, -2, 3.0]] + rs = DataFrame(vals, columns=["A", "A", "B"]) + xp = DataFrame(vals) + xp.columns = ["A", "A", "B"] + tm.assert_frame_equal(rs, xp) + + def test_set_value_by_index(self): + # See gh-12344 + warn = None + msg = "will attempt to set the values inplace" + + df = DataFrame(np.arange(9).reshape(3, 3).T) + df.columns = list("AAA") + expected = df.iloc[:, 2].copy() + + with tm.assert_produces_warning(warn, match=msg): + df.iloc[:, 0] = 3 + tm.assert_series_equal(df.iloc[:, 2], expected) + + df = DataFrame(np.arange(9).reshape(3, 3).T) + df.columns = [2, float(2), str(2)] + expected = df.iloc[:, 1].copy() + + with tm.assert_produces_warning(warn, match=msg): + df.iloc[:, 0] = 3 + tm.assert_series_equal(df.iloc[:, 1], expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_npfuncs.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_npfuncs.py new file mode 100644 index 0000000000000000000000000000000000000000..afb53bf2de93aa591ca9d7b99af185bc0c4083ee --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_npfuncs.py @@ -0,0 +1,89 @@ +""" +Tests for np.foo applied to DataFrame, not necessarily ufuncs. +""" +import numpy as np + +from pandas import ( + Categorical, + DataFrame, +) +import pandas._testing as tm + + +class TestAsArray: + def test_asarray_homogeneous(self): + df = DataFrame({"A": Categorical([1, 2]), "B": Categorical([1, 2])}) + result = np.asarray(df) + # may change from object in the future + expected = np.array([[1, 1], [2, 2]], dtype="object") + tm.assert_numpy_array_equal(result, expected) + + def test_np_sqrt(self, float_frame): + with np.errstate(all="ignore"): + result = np.sqrt(float_frame) + assert isinstance(result, type(float_frame)) + assert result.index.is_(float_frame.index) + assert result.columns.is_(float_frame.columns) + + tm.assert_frame_equal(result, float_frame.apply(np.sqrt)) + + def test_sum_deprecated_axis_behavior(self): + # GH#52042 deprecated behavior of df.sum(axis=None), which gets + # called when we do np.sum(df) + + arr = np.random.default_rng(2).standard_normal((4, 3)) + df = DataFrame(arr) + + msg = "The behavior of DataFrame.sum with axis=None is deprecated" + with tm.assert_produces_warning( + FutureWarning, match=msg, check_stacklevel=False + ): + res = np.sum(df) + + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = df.sum(axis=None) + tm.assert_series_equal(res, expected) + + def test_np_ravel(self): + # GH26247 + arr = np.array( + [ + [0.11197053, 0.44361564, -0.92589452], + [0.05883648, -0.00948922, -0.26469934], + ] + ) + + result = np.ravel([DataFrame(batch.reshape(1, 3)) for batch in arr]) + expected = np.array( + [ + 0.11197053, + 0.44361564, + -0.92589452, + 0.05883648, + -0.00948922, + -0.26469934, + ] + ) + tm.assert_numpy_array_equal(result, expected) + + result = np.ravel(DataFrame(arr[0].reshape(1, 3), columns=["x1", "x2", "x3"])) + expected = np.array([0.11197053, 0.44361564, -0.92589452]) + tm.assert_numpy_array_equal(result, expected) + + result = np.ravel( + [ + DataFrame(batch.reshape(1, 3), columns=["x1", "x2", "x3"]) + for batch in arr + ] + ) + expected = np.array( + [ + 0.11197053, + 0.44361564, + -0.92589452, + 0.05883648, + -0.00948922, + -0.26469934, + ] + ) + tm.assert_numpy_array_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_query_eval.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_query_eval.py new file mode 100644 index 0000000000000000000000000000000000000000..ffabf238a4884d3b7436c890da77e2700dc8bde4 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_query_eval.py @@ -0,0 +1,1437 @@ +import operator + +import numpy as np +import pytest + +from pandas.errors import ( + NumExprClobberingError, + UndefinedVariableError, +) +import pandas.util._test_decorators as td + +import pandas as pd +from pandas import ( + DataFrame, + Index, + MultiIndex, + Series, + date_range, +) +import pandas._testing as tm +from pandas.core.computation.check import NUMEXPR_INSTALLED + + +@pytest.fixture(params=["python", "pandas"], ids=lambda x: x) +def parser(request): + return request.param + + +@pytest.fixture( + params=["python", pytest.param("numexpr", marks=td.skip_if_no("numexpr"))], + ids=lambda x: x, +) +def engine(request): + return request.param + + +def skip_if_no_pandas_parser(parser): + if parser != "pandas": + pytest.skip(f"cannot evaluate with parser={parser}") + + +class TestCompat: + @pytest.fixture + def df(self): + return DataFrame({"A": [1, 2, 3]}) + + @pytest.fixture + def expected1(self, df): + return df[df.A > 0] + + @pytest.fixture + def expected2(self, df): + return df.A + 1 + + def test_query_default(self, df, expected1, expected2): + # GH 12749 + # this should always work, whether NUMEXPR_INSTALLED or not + result = df.query("A>0") + tm.assert_frame_equal(result, expected1) + result = df.eval("A+1") + tm.assert_series_equal(result, expected2, check_names=False) + + def test_query_None(self, df, expected1, expected2): + result = df.query("A>0", engine=None) + tm.assert_frame_equal(result, expected1) + result = df.eval("A+1", engine=None) + tm.assert_series_equal(result, expected2, check_names=False) + + def test_query_python(self, df, expected1, expected2): + result = df.query("A>0", engine="python") + tm.assert_frame_equal(result, expected1) + result = df.eval("A+1", engine="python") + tm.assert_series_equal(result, expected2, check_names=False) + + def test_query_numexpr(self, df, expected1, expected2): + if NUMEXPR_INSTALLED: + result = df.query("A>0", engine="numexpr") + tm.assert_frame_equal(result, expected1) + result = df.eval("A+1", engine="numexpr") + tm.assert_series_equal(result, expected2, check_names=False) + else: + msg = ( + r"'numexpr' is not installed or an unsupported version. " + r"Cannot use engine='numexpr' for query/eval if 'numexpr' is " + r"not installed" + ) + with pytest.raises(ImportError, match=msg): + df.query("A>0", engine="numexpr") + with pytest.raises(ImportError, match=msg): + df.eval("A+1", engine="numexpr") + + +class TestDataFrameEval: + # smaller hits python, larger hits numexpr + @pytest.mark.parametrize("n", [4, 4000]) + @pytest.mark.parametrize( + "op_str,op,rop", + [ + ("+", "__add__", "__radd__"), + ("-", "__sub__", "__rsub__"), + ("*", "__mul__", "__rmul__"), + ("/", "__truediv__", "__rtruediv__"), + ], + ) + def test_ops(self, op_str, op, rop, n): + # tst ops and reversed ops in evaluation + # GH7198 + + df = DataFrame(1, index=range(n), columns=list("abcd")) + df.iloc[0] = 2 + m = df.mean() + + base = DataFrame( # noqa: F841 + np.tile(m.values, n).reshape(n, -1), columns=list("abcd") + ) + + expected = eval(f"base {op_str} df") + + # ops as strings + result = eval(f"m {op_str} df") + tm.assert_frame_equal(result, expected) + + # these are commutative + if op in ["+", "*"]: + result = getattr(df, op)(m) + tm.assert_frame_equal(result, expected) + + # these are not + elif op in ["-", "/"]: + result = getattr(df, rop)(m) + tm.assert_frame_equal(result, expected) + + def test_dataframe_sub_numexpr_path(self): + # GH7192: Note we need a large number of rows to ensure this + # goes through the numexpr path + df = DataFrame({"A": np.random.default_rng(2).standard_normal(25000)}) + df.iloc[0:5] = np.nan + expected = 1 - np.isnan(df.iloc[0:25]) + result = (1 - np.isnan(df)).iloc[0:25] + tm.assert_frame_equal(result, expected) + + def test_query_non_str(self): + # GH 11485 + df = DataFrame({"A": [1, 2, 3], "B": ["a", "b", "b"]}) + + msg = "expr must be a string to be evaluated" + with pytest.raises(ValueError, match=msg): + df.query(lambda x: x.B == "b") + + with pytest.raises(ValueError, match=msg): + df.query(111) + + def test_query_empty_string(self): + # GH 13139 + df = DataFrame({"A": [1, 2, 3]}) + + msg = "expr cannot be an empty string" + with pytest.raises(ValueError, match=msg): + df.query("") + + def test_eval_resolvers_as_list(self): + # GH 14095 + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 2)), columns=list("ab") + ) + dict1 = {"a": 1} + dict2 = {"b": 2} + assert df.eval("a + b", resolvers=[dict1, dict2]) == dict1["a"] + dict2["b"] + assert pd.eval("a + b", resolvers=[dict1, dict2]) == dict1["a"] + dict2["b"] + + def test_eval_resolvers_combined(self): + # GH 34966 + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 2)), columns=list("ab") + ) + dict1 = {"c": 2} + + # Both input and default index/column resolvers should be usable + result = df.eval("a + b * c", resolvers=[dict1]) + + expected = df["a"] + df["b"] * dict1["c"] + tm.assert_series_equal(result, expected) + + def test_eval_object_dtype_binop(self): + # GH#24883 + df = DataFrame({"a1": ["Y", "N"]}) + res = df.eval("c = ((a1 == 'Y') & True)") + expected = DataFrame({"a1": ["Y", "N"], "c": [True, False]}) + tm.assert_frame_equal(res, expected) + + def test_extension_array_eval(self, engine, parser, request): + # GH#58748 + if engine == "numexpr": + mark = pytest.mark.xfail( + reason="numexpr does not support extension array dtypes" + ) + request.applymarker(mark) + df = DataFrame({"a": pd.array([1, 2, 3]), "b": pd.array([4, 5, 6])}) + result = df.eval("a / b", engine=engine, parser=parser) + expected = Series(pd.array([0.25, 0.40, 0.50])) + tm.assert_series_equal(result, expected) + + def test_complex_eval(self, engine, parser): + # GH#21374 + df = DataFrame({"a": [1 + 2j], "b": [1 + 1j]}) + result = df.eval("a/b", engine=engine, parser=parser) + expected = Series([1.5 + 0.5j]) + tm.assert_series_equal(result, expected) + + +class TestDataFrameQueryWithMultiIndex: + def test_query_with_named_multiindex(self, parser, engine): + skip_if_no_pandas_parser(parser) + a = np.random.default_rng(2).choice(["red", "green"], size=10) + b = np.random.default_rng(2).choice(["eggs", "ham"], size=10) + index = MultiIndex.from_arrays([a, b], names=["color", "food"]) + df = DataFrame(np.random.default_rng(2).standard_normal((10, 2)), index=index) + ind = Series( + df.index.get_level_values("color").values, index=index, name="color" + ) + + # equality + res1 = df.query('color == "red"', parser=parser, engine=engine) + res2 = df.query('"red" == color', parser=parser, engine=engine) + exp = df[ind == "red"] + tm.assert_frame_equal(res1, exp) + tm.assert_frame_equal(res2, exp) + + # inequality + res1 = df.query('color != "red"', parser=parser, engine=engine) + res2 = df.query('"red" != color', parser=parser, engine=engine) + exp = df[ind != "red"] + tm.assert_frame_equal(res1, exp) + tm.assert_frame_equal(res2, exp) + + # list equality (really just set membership) + res1 = df.query('color == ["red"]', parser=parser, engine=engine) + res2 = df.query('["red"] == color', parser=parser, engine=engine) + exp = df[ind.isin(["red"])] + tm.assert_frame_equal(res1, exp) + tm.assert_frame_equal(res2, exp) + + res1 = df.query('color != ["red"]', parser=parser, engine=engine) + res2 = df.query('["red"] != color', parser=parser, engine=engine) + exp = df[~ind.isin(["red"])] + tm.assert_frame_equal(res1, exp) + tm.assert_frame_equal(res2, exp) + + # in/not in ops + res1 = df.query('["red"] in color', parser=parser, engine=engine) + res2 = df.query('"red" in color', parser=parser, engine=engine) + exp = df[ind.isin(["red"])] + tm.assert_frame_equal(res1, exp) + tm.assert_frame_equal(res2, exp) + + res1 = df.query('["red"] not in color', parser=parser, engine=engine) + res2 = df.query('"red" not in color', parser=parser, engine=engine) + exp = df[~ind.isin(["red"])] + tm.assert_frame_equal(res1, exp) + tm.assert_frame_equal(res2, exp) + + def test_query_with_unnamed_multiindex(self, parser, engine): + skip_if_no_pandas_parser(parser) + a = np.random.default_rng(2).choice(["red", "green"], size=10) + b = np.random.default_rng(2).choice(["eggs", "ham"], size=10) + index = MultiIndex.from_arrays([a, b]) + df = DataFrame(np.random.default_rng(2).standard_normal((10, 2)), index=index) + ind = Series(df.index.get_level_values(0).values, index=index) + + res1 = df.query('ilevel_0 == "red"', parser=parser, engine=engine) + res2 = df.query('"red" == ilevel_0', parser=parser, engine=engine) + exp = df[ind == "red"] + tm.assert_frame_equal(res1, exp) + tm.assert_frame_equal(res2, exp) + + # inequality + res1 = df.query('ilevel_0 != "red"', parser=parser, engine=engine) + res2 = df.query('"red" != ilevel_0', parser=parser, engine=engine) + exp = df[ind != "red"] + tm.assert_frame_equal(res1, exp) + tm.assert_frame_equal(res2, exp) + + # list equality (really just set membership) + res1 = df.query('ilevel_0 == ["red"]', parser=parser, engine=engine) + res2 = df.query('["red"] == ilevel_0', parser=parser, engine=engine) + exp = df[ind.isin(["red"])] + tm.assert_frame_equal(res1, exp) + tm.assert_frame_equal(res2, exp) + + res1 = df.query('ilevel_0 != ["red"]', parser=parser, engine=engine) + res2 = df.query('["red"] != ilevel_0', parser=parser, engine=engine) + exp = df[~ind.isin(["red"])] + tm.assert_frame_equal(res1, exp) + tm.assert_frame_equal(res2, exp) + + # in/not in ops + res1 = df.query('["red"] in ilevel_0', parser=parser, engine=engine) + res2 = df.query('"red" in ilevel_0', parser=parser, engine=engine) + exp = df[ind.isin(["red"])] + tm.assert_frame_equal(res1, exp) + tm.assert_frame_equal(res2, exp) + + res1 = df.query('["red"] not in ilevel_0', parser=parser, engine=engine) + res2 = df.query('"red" not in ilevel_0', parser=parser, engine=engine) + exp = df[~ind.isin(["red"])] + tm.assert_frame_equal(res1, exp) + tm.assert_frame_equal(res2, exp) + + # ## LEVEL 1 + ind = Series(df.index.get_level_values(1).values, index=index) + res1 = df.query('ilevel_1 == "eggs"', parser=parser, engine=engine) + res2 = df.query('"eggs" == ilevel_1', parser=parser, engine=engine) + exp = df[ind == "eggs"] + tm.assert_frame_equal(res1, exp) + tm.assert_frame_equal(res2, exp) + + # inequality + res1 = df.query('ilevel_1 != "eggs"', parser=parser, engine=engine) + res2 = df.query('"eggs" != ilevel_1', parser=parser, engine=engine) + exp = df[ind != "eggs"] + tm.assert_frame_equal(res1, exp) + tm.assert_frame_equal(res2, exp) + + # list equality (really just set membership) + res1 = df.query('ilevel_1 == ["eggs"]', parser=parser, engine=engine) + res2 = df.query('["eggs"] == ilevel_1', parser=parser, engine=engine) + exp = df[ind.isin(["eggs"])] + tm.assert_frame_equal(res1, exp) + tm.assert_frame_equal(res2, exp) + + res1 = df.query('ilevel_1 != ["eggs"]', parser=parser, engine=engine) + res2 = df.query('["eggs"] != ilevel_1', parser=parser, engine=engine) + exp = df[~ind.isin(["eggs"])] + tm.assert_frame_equal(res1, exp) + tm.assert_frame_equal(res2, exp) + + # in/not in ops + res1 = df.query('["eggs"] in ilevel_1', parser=parser, engine=engine) + res2 = df.query('"eggs" in ilevel_1', parser=parser, engine=engine) + exp = df[ind.isin(["eggs"])] + tm.assert_frame_equal(res1, exp) + tm.assert_frame_equal(res2, exp) + + res1 = df.query('["eggs"] not in ilevel_1', parser=parser, engine=engine) + res2 = df.query('"eggs" not in ilevel_1', parser=parser, engine=engine) + exp = df[~ind.isin(["eggs"])] + tm.assert_frame_equal(res1, exp) + tm.assert_frame_equal(res2, exp) + + def test_query_with_partially_named_multiindex(self, parser, engine): + skip_if_no_pandas_parser(parser) + a = np.random.default_rng(2).choice(["red", "green"], size=10) + b = np.arange(10) + index = MultiIndex.from_arrays([a, b]) + index.names = [None, "rating"] + df = DataFrame(np.random.default_rng(2).standard_normal((10, 2)), index=index) + res = df.query("rating == 1", parser=parser, engine=engine) + ind = Series( + df.index.get_level_values("rating").values, index=index, name="rating" + ) + exp = df[ind == 1] + tm.assert_frame_equal(res, exp) + + res = df.query("rating != 1", parser=parser, engine=engine) + ind = Series( + df.index.get_level_values("rating").values, index=index, name="rating" + ) + exp = df[ind != 1] + tm.assert_frame_equal(res, exp) + + res = df.query('ilevel_0 == "red"', parser=parser, engine=engine) + ind = Series(df.index.get_level_values(0).values, index=index) + exp = df[ind == "red"] + tm.assert_frame_equal(res, exp) + + res = df.query('ilevel_0 != "red"', parser=parser, engine=engine) + ind = Series(df.index.get_level_values(0).values, index=index) + exp = df[ind != "red"] + tm.assert_frame_equal(res, exp) + + def test_query_multiindex_get_index_resolvers(self): + df = DataFrame( + np.ones((10, 3)), + index=MultiIndex.from_arrays( + [range(10) for _ in range(2)], names=["spam", "eggs"] + ), + ) + resolvers = df._get_index_resolvers() + + def to_series(mi, level): + level_values = mi.get_level_values(level) + s = level_values.to_series() + s.index = mi + return s + + col_series = df.columns.to_series() + expected = { + "index": df.index, + "columns": col_series, + "spam": to_series(df.index, "spam"), + "eggs": to_series(df.index, "eggs"), + "clevel_0": col_series, + } + for k, v in resolvers.items(): + if isinstance(v, Index): + assert v.is_(expected[k]) + elif isinstance(v, Series): + tm.assert_series_equal(v, expected[k]) + else: + raise AssertionError("object must be a Series or Index") + + +@td.skip_if_no("numexpr") +class TestDataFrameQueryNumExprPandas: + @pytest.fixture + def engine(self): + return "numexpr" + + @pytest.fixture + def parser(self): + return "pandas" + + def test_date_query_with_attribute_access(self, engine, parser): + skip_if_no_pandas_parser(parser) + df = DataFrame(np.random.default_rng(2).standard_normal((5, 3))) + df["dates1"] = date_range("1/1/2012", periods=5) + df["dates2"] = date_range("1/1/2013", periods=5) + df["dates3"] = date_range("1/1/2014", periods=5) + res = df.query( + "@df.dates1 < 20130101 < @df.dates3", engine=engine, parser=parser + ) + expec = df[(df.dates1 < "20130101") & ("20130101" < df.dates3)] + tm.assert_frame_equal(res, expec) + + def test_date_query_no_attribute_access(self, engine, parser): + df = DataFrame(np.random.default_rng(2).standard_normal((5, 3))) + df["dates1"] = date_range("1/1/2012", periods=5) + df["dates2"] = date_range("1/1/2013", periods=5) + df["dates3"] = date_range("1/1/2014", periods=5) + res = df.query("dates1 < 20130101 < dates3", engine=engine, parser=parser) + expec = df[(df.dates1 < "20130101") & ("20130101" < df.dates3)] + tm.assert_frame_equal(res, expec) + + def test_date_query_with_NaT(self, engine, parser): + n = 10 + df = DataFrame(np.random.default_rng(2).standard_normal((n, 3))) + df["dates1"] = date_range("1/1/2012", periods=n) + df["dates2"] = date_range("1/1/2013", periods=n) + df["dates3"] = date_range("1/1/2014", periods=n) + df.loc[np.random.default_rng(2).random(n) > 0.5, "dates1"] = pd.NaT + df.loc[np.random.default_rng(2).random(n) > 0.5, "dates3"] = pd.NaT + res = df.query("dates1 < 20130101 < dates3", engine=engine, parser=parser) + expec = df[(df.dates1 < "20130101") & ("20130101" < df.dates3)] + tm.assert_frame_equal(res, expec) + + def test_date_index_query(self, engine, parser): + n = 10 + df = DataFrame(np.random.default_rng(2).standard_normal((n, 3))) + df["dates1"] = date_range("1/1/2012", periods=n) + df["dates3"] = date_range("1/1/2014", periods=n) + return_value = df.set_index("dates1", inplace=True, drop=True) + assert return_value is None + res = df.query("index < 20130101 < dates3", engine=engine, parser=parser) + expec = df[(df.index < "20130101") & ("20130101" < df.dates3)] + tm.assert_frame_equal(res, expec) + + def test_date_index_query_with_NaT(self, engine, parser): + n = 10 + # Cast to object to avoid implicit cast when setting entry to pd.NaT below + df = DataFrame(np.random.default_rng(2).standard_normal((n, 3))).astype( + {0: object} + ) + df["dates1"] = date_range("1/1/2012", periods=n) + df["dates3"] = date_range("1/1/2014", periods=n) + df.iloc[0, 0] = pd.NaT + return_value = df.set_index("dates1", inplace=True, drop=True) + assert return_value is None + res = df.query("index < 20130101 < dates3", engine=engine, parser=parser) + expec = df[(df.index < "20130101") & ("20130101" < df.dates3)] + tm.assert_frame_equal(res, expec) + + def test_date_index_query_with_NaT_duplicates(self, engine, parser): + n = 10 + d = {} + d["dates1"] = date_range("1/1/2012", periods=n) + d["dates3"] = date_range("1/1/2014", periods=n) + df = DataFrame(d) + df.loc[np.random.default_rng(2).random(n) > 0.5, "dates1"] = pd.NaT + return_value = df.set_index("dates1", inplace=True, drop=True) + assert return_value is None + res = df.query("dates1 < 20130101 < dates3", engine=engine, parser=parser) + expec = df[(df.index.to_series() < "20130101") & ("20130101" < df.dates3)] + tm.assert_frame_equal(res, expec) + + def test_date_query_with_non_date(self, engine, parser): + n = 10 + df = DataFrame( + {"dates": date_range("1/1/2012", periods=n), "nondate": np.arange(n)} + ) + + result = df.query("dates == nondate", parser=parser, engine=engine) + assert len(result) == 0 + + result = df.query("dates != nondate", parser=parser, engine=engine) + tm.assert_frame_equal(result, df) + + msg = r"Invalid comparison between dtype=datetime64\[ns\] and ndarray" + for op in ["<", ">", "<=", ">="]: + with pytest.raises(TypeError, match=msg): + df.query(f"dates {op} nondate", parser=parser, engine=engine) + + def test_query_syntax_error(self, engine, parser): + df = DataFrame({"i": range(10), "+": range(3, 13), "r": range(4, 14)}) + msg = "invalid syntax" + with pytest.raises(SyntaxError, match=msg): + df.query("i - +", engine=engine, parser=parser) + + def test_query_scope(self, engine, parser): + skip_if_no_pandas_parser(parser) + + df = DataFrame( + np.random.default_rng(2).standard_normal((20, 2)), columns=list("ab") + ) + + a, b = 1, 2 # noqa: F841 + res = df.query("a > b", engine=engine, parser=parser) + expected = df[df.a > df.b] + tm.assert_frame_equal(res, expected) + + res = df.query("@a > b", engine=engine, parser=parser) + expected = df[a > df.b] + tm.assert_frame_equal(res, expected) + + # no local variable c + with pytest.raises( + UndefinedVariableError, match="local variable 'c' is not defined" + ): + df.query("@a > b > @c", engine=engine, parser=parser) + + # no column named 'c' + with pytest.raises(UndefinedVariableError, match="name 'c' is not defined"): + df.query("@a > b > c", engine=engine, parser=parser) + + def test_query_doesnt_pickup_local(self, engine, parser): + n = m = 10 + df = DataFrame( + np.random.default_rng(2).integers(m, size=(n, 3)), columns=list("abc") + ) + + # we don't pick up the local 'sin' + with pytest.raises(UndefinedVariableError, match="name 'sin' is not defined"): + df.query("sin > 5", engine=engine, parser=parser) + + def test_query_builtin(self, engine, parser): + n = m = 10 + df = DataFrame( + np.random.default_rng(2).integers(m, size=(n, 3)), columns=list("abc") + ) + + df.index.name = "sin" + msg = "Variables in expression.+" + with pytest.raises(NumExprClobberingError, match=msg): + df.query("sin > 5", engine=engine, parser=parser) + + def test_query(self, engine, parser): + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 3)), columns=["a", "b", "c"] + ) + + tm.assert_frame_equal( + df.query("a < b", engine=engine, parser=parser), df[df.a < df.b] + ) + tm.assert_frame_equal( + df.query("a + b > b * c", engine=engine, parser=parser), + df[df.a + df.b > df.b * df.c], + ) + + def test_query_index_with_name(self, engine, parser): + df = DataFrame( + np.random.default_rng(2).integers(10, size=(10, 3)), + index=Index(range(10), name="blob"), + columns=["a", "b", "c"], + ) + res = df.query("(blob < 5) & (a < b)", engine=engine, parser=parser) + expec = df[(df.index < 5) & (df.a < df.b)] + tm.assert_frame_equal(res, expec) + + res = df.query("blob < b", engine=engine, parser=parser) + expec = df[df.index < df.b] + + tm.assert_frame_equal(res, expec) + + def test_query_index_without_name(self, engine, parser): + df = DataFrame( + np.random.default_rng(2).integers(10, size=(10, 3)), + index=range(10), + columns=["a", "b", "c"], + ) + + # "index" should refer to the index + res = df.query("index < b", engine=engine, parser=parser) + expec = df[df.index < df.b] + tm.assert_frame_equal(res, expec) + + # test against a scalar + res = df.query("index < 5", engine=engine, parser=parser) + expec = df[df.index < 5] + tm.assert_frame_equal(res, expec) + + def test_nested_scope(self, engine, parser): + skip_if_no_pandas_parser(parser) + + df = DataFrame(np.random.default_rng(2).standard_normal((5, 3))) + df2 = DataFrame(np.random.default_rng(2).standard_normal((5, 3))) + expected = df[(df > 0) & (df2 > 0)] + + result = df.query("(@df > 0) & (@df2 > 0)", engine=engine, parser=parser) + tm.assert_frame_equal(result, expected) + + result = pd.eval("df[df > 0 and df2 > 0]", engine=engine, parser=parser) + tm.assert_frame_equal(result, expected) + + result = pd.eval( + "df[df > 0 and df2 > 0 and df[df > 0] > 0]", engine=engine, parser=parser + ) + expected = df[(df > 0) & (df2 > 0) & (df[df > 0] > 0)] + tm.assert_frame_equal(result, expected) + + result = pd.eval("df[(df>0) & (df2>0)]", engine=engine, parser=parser) + expected = df.query("(@df>0) & (@df2>0)", engine=engine, parser=parser) + tm.assert_frame_equal(result, expected) + + def test_nested_raises_on_local_self_reference(self, engine, parser): + df = DataFrame(np.random.default_rng(2).standard_normal((5, 3))) + + # can't reference ourself b/c we're a local so @ is necessary + with pytest.raises(UndefinedVariableError, match="name 'df' is not defined"): + df.query("df > 0", engine=engine, parser=parser) + + def test_local_syntax(self, engine, parser): + skip_if_no_pandas_parser(parser) + + df = DataFrame( + np.random.default_rng(2).standard_normal((100, 10)), + columns=list("abcdefghij"), + ) + b = 1 + expect = df[df.a < b] + result = df.query("a < @b", engine=engine, parser=parser) + tm.assert_frame_equal(result, expect) + + expect = df[df.a < df.b] + result = df.query("a < b", engine=engine, parser=parser) + tm.assert_frame_equal(result, expect) + + def test_chained_cmp_and_in(self, engine, parser): + skip_if_no_pandas_parser(parser) + cols = list("abc") + df = DataFrame( + np.random.default_rng(2).standard_normal((100, len(cols))), columns=cols + ) + res = df.query( + "a < b < c and a not in b not in c", engine=engine, parser=parser + ) + ind = (df.a < df.b) & (df.b < df.c) & ~df.b.isin(df.a) & ~df.c.isin(df.b) + expec = df[ind] + tm.assert_frame_equal(res, expec) + + def test_local_variable_with_in(self, engine, parser): + skip_if_no_pandas_parser(parser) + a = Series(np.random.default_rng(2).integers(3, size=15), name="a") + b = Series(np.random.default_rng(2).integers(10, size=15), name="b") + df = DataFrame({"a": a, "b": b}) + + expected = df.loc[(df.b - 1).isin(a)] + result = df.query("b - 1 in a", engine=engine, parser=parser) + tm.assert_frame_equal(expected, result) + + b = Series(np.random.default_rng(2).integers(10, size=15), name="b") + expected = df.loc[(b - 1).isin(a)] + result = df.query("@b - 1 in a", engine=engine, parser=parser) + tm.assert_frame_equal(expected, result) + + def test_at_inside_string(self, engine, parser): + skip_if_no_pandas_parser(parser) + c = 1 # noqa: F841 + df = DataFrame({"a": ["a", "a", "b", "b", "@c", "@c"]}) + result = df.query('a == "@c"', engine=engine, parser=parser) + expected = df[df.a == "@c"] + tm.assert_frame_equal(result, expected) + + def test_query_undefined_local(self): + engine, parser = self.engine, self.parser + skip_if_no_pandas_parser(parser) + + df = DataFrame(np.random.default_rng(2).random((10, 2)), columns=list("ab")) + with pytest.raises( + UndefinedVariableError, match="local variable 'c' is not defined" + ): + df.query("a == @c", engine=engine, parser=parser) + + def test_index_resolvers_come_after_columns_with_the_same_name( + self, engine, parser + ): + n = 1 # noqa: F841 + a = np.r_[20:101:20] + + df = DataFrame( + {"index": a, "b": np.random.default_rng(2).standard_normal(a.size)} + ) + df.index.name = "index" + result = df.query("index > 5", engine=engine, parser=parser) + expected = df[df["index"] > 5] + tm.assert_frame_equal(result, expected) + + df = DataFrame( + {"index": a, "b": np.random.default_rng(2).standard_normal(a.size)} + ) + result = df.query("ilevel_0 > 5", engine=engine, parser=parser) + expected = df.loc[df.index[df.index > 5]] + tm.assert_frame_equal(result, expected) + + df = DataFrame({"a": a, "b": np.random.default_rng(2).standard_normal(a.size)}) + df.index.name = "a" + result = df.query("a > 5", engine=engine, parser=parser) + expected = df[df.a > 5] + tm.assert_frame_equal(result, expected) + + result = df.query("index > 5", engine=engine, parser=parser) + expected = df.loc[df.index[df.index > 5]] + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("op, f", [["==", operator.eq], ["!=", operator.ne]]) + def test_inf(self, op, f, engine, parser): + n = 10 + df = DataFrame( + { + "a": np.random.default_rng(2).random(n), + "b": np.random.default_rng(2).random(n), + } + ) + df.loc[::2, 0] = np.inf + q = f"a {op} inf" + expected = df[f(df.a, np.inf)] + result = df.query(q, engine=engine, parser=parser) + tm.assert_frame_equal(result, expected) + + def test_check_tz_aware_index_query(self, tz_aware_fixture): + # https://github.com/pandas-dev/pandas/issues/29463 + tz = tz_aware_fixture + df_index = date_range( + start="2019-01-01", freq="1d", periods=10, tz=tz, name="time" + ) + expected = DataFrame(index=df_index) + df = DataFrame(index=df_index) + result = df.query('"2018-01-03 00:00:00+00" < time') + tm.assert_frame_equal(result, expected) + + expected = DataFrame(df_index) + result = df.reset_index().query('"2018-01-03 00:00:00+00" < time') + tm.assert_frame_equal(result, expected) + + def test_method_calls_in_query(self, engine, parser): + # https://github.com/pandas-dev/pandas/issues/22435 + n = 10 + df = DataFrame( + { + "a": 2 * np.random.default_rng(2).random(n), + "b": np.random.default_rng(2).random(n), + } + ) + expected = df[df["a"].astype("int") == 0] + result = df.query("a.astype('int') == 0", engine=engine, parser=parser) + tm.assert_frame_equal(result, expected) + + df = DataFrame( + { + "a": np.where( + np.random.default_rng(2).random(n) < 0.5, + np.nan, + np.random.default_rng(2).standard_normal(n), + ), + "b": np.random.default_rng(2).standard_normal(n), + } + ) + expected = df[df["a"].notnull()] + result = df.query("a.notnull()", engine=engine, parser=parser) + tm.assert_frame_equal(result, expected) + + +@td.skip_if_no("numexpr") +class TestDataFrameQueryNumExprPython(TestDataFrameQueryNumExprPandas): + @pytest.fixture + def engine(self): + return "numexpr" + + @pytest.fixture + def parser(self): + return "python" + + def test_date_query_no_attribute_access(self, engine, parser): + df = DataFrame(np.random.default_rng(2).standard_normal((5, 3))) + df["dates1"] = date_range("1/1/2012", periods=5) + df["dates2"] = date_range("1/1/2013", periods=5) + df["dates3"] = date_range("1/1/2014", periods=5) + res = df.query( + "(dates1 < 20130101) & (20130101 < dates3)", engine=engine, parser=parser + ) + expec = df[(df.dates1 < "20130101") & ("20130101" < df.dates3)] + tm.assert_frame_equal(res, expec) + + def test_date_query_with_NaT(self, engine, parser): + n = 10 + df = DataFrame(np.random.default_rng(2).standard_normal((n, 3))) + df["dates1"] = date_range("1/1/2012", periods=n) + df["dates2"] = date_range("1/1/2013", periods=n) + df["dates3"] = date_range("1/1/2014", periods=n) + df.loc[np.random.default_rng(2).random(n) > 0.5, "dates1"] = pd.NaT + df.loc[np.random.default_rng(2).random(n) > 0.5, "dates3"] = pd.NaT + res = df.query( + "(dates1 < 20130101) & (20130101 < dates3)", engine=engine, parser=parser + ) + expec = df[(df.dates1 < "20130101") & ("20130101" < df.dates3)] + tm.assert_frame_equal(res, expec) + + def test_date_index_query(self, engine, parser): + n = 10 + df = DataFrame(np.random.default_rng(2).standard_normal((n, 3))) + df["dates1"] = date_range("1/1/2012", periods=n) + df["dates3"] = date_range("1/1/2014", periods=n) + return_value = df.set_index("dates1", inplace=True, drop=True) + assert return_value is None + res = df.query( + "(index < 20130101) & (20130101 < dates3)", engine=engine, parser=parser + ) + expec = df[(df.index < "20130101") & ("20130101" < df.dates3)] + tm.assert_frame_equal(res, expec) + + def test_date_index_query_with_NaT(self, engine, parser): + n = 10 + # Cast to object to avoid implicit cast when setting entry to pd.NaT below + df = DataFrame(np.random.default_rng(2).standard_normal((n, 3))).astype( + {0: object} + ) + df["dates1"] = date_range("1/1/2012", periods=n) + df["dates3"] = date_range("1/1/2014", periods=n) + df.iloc[0, 0] = pd.NaT + return_value = df.set_index("dates1", inplace=True, drop=True) + assert return_value is None + res = df.query( + "(index < 20130101) & (20130101 < dates3)", engine=engine, parser=parser + ) + expec = df[(df.index < "20130101") & ("20130101" < df.dates3)] + tm.assert_frame_equal(res, expec) + + def test_date_index_query_with_NaT_duplicates(self, engine, parser): + n = 10 + df = DataFrame(np.random.default_rng(2).standard_normal((n, 3))) + df["dates1"] = date_range("1/1/2012", periods=n) + df["dates3"] = date_range("1/1/2014", periods=n) + df.loc[np.random.default_rng(2).random(n) > 0.5, "dates1"] = pd.NaT + return_value = df.set_index("dates1", inplace=True, drop=True) + assert return_value is None + msg = r"'BoolOp' nodes are not implemented" + with pytest.raises(NotImplementedError, match=msg): + df.query("index < 20130101 < dates3", engine=engine, parser=parser) + + def test_nested_scope(self, engine, parser): + # smoke test + x = 1 # noqa: F841 + result = pd.eval("x + 1", engine=engine, parser=parser) + assert result == 2 + + df = DataFrame(np.random.default_rng(2).standard_normal((5, 3))) + df2 = DataFrame(np.random.default_rng(2).standard_normal((5, 3))) + + # don't have the pandas parser + msg = r"The '@' prefix is only supported by the pandas parser" + with pytest.raises(SyntaxError, match=msg): + df.query("(@df>0) & (@df2>0)", engine=engine, parser=parser) + + with pytest.raises(UndefinedVariableError, match="name 'df' is not defined"): + df.query("(df>0) & (df2>0)", engine=engine, parser=parser) + + expected = df[(df > 0) & (df2 > 0)] + result = pd.eval("df[(df > 0) & (df2 > 0)]", engine=engine, parser=parser) + tm.assert_frame_equal(expected, result) + + expected = df[(df > 0) & (df2 > 0) & (df[df > 0] > 0)] + result = pd.eval( + "df[(df > 0) & (df2 > 0) & (df[df > 0] > 0)]", engine=engine, parser=parser + ) + tm.assert_frame_equal(expected, result) + + def test_query_numexpr_with_min_and_max_columns(self): + df = DataFrame({"min": [1, 2, 3], "max": [4, 5, 6]}) + regex_to_match = ( + r"Variables in expression \"\(min\) == \(1\)\" " + r"overlap with builtins: \('min'\)" + ) + with pytest.raises(NumExprClobberingError, match=regex_to_match): + df.query("min == 1") + + regex_to_match = ( + r"Variables in expression \"\(max\) == \(1\)\" " + r"overlap with builtins: \('max'\)" + ) + with pytest.raises(NumExprClobberingError, match=regex_to_match): + df.query("max == 1") + + +class TestDataFrameQueryPythonPandas(TestDataFrameQueryNumExprPandas): + @pytest.fixture + def engine(self): + return "python" + + @pytest.fixture + def parser(self): + return "pandas" + + def test_query_builtin(self, engine, parser): + n = m = 10 + df = DataFrame( + np.random.default_rng(2).integers(m, size=(n, 3)), columns=list("abc") + ) + + df.index.name = "sin" + expected = df[df.index > 5] + result = df.query("sin > 5", engine=engine, parser=parser) + tm.assert_frame_equal(expected, result) + + +class TestDataFrameQueryPythonPython(TestDataFrameQueryNumExprPython): + @pytest.fixture + def engine(self): + return "python" + + @pytest.fixture + def parser(self): + return "python" + + def test_query_builtin(self, engine, parser): + n = m = 10 + df = DataFrame( + np.random.default_rng(2).integers(m, size=(n, 3)), columns=list("abc") + ) + + df.index.name = "sin" + expected = df[df.index > 5] + result = df.query("sin > 5", engine=engine, parser=parser) + tm.assert_frame_equal(expected, result) + + +class TestDataFrameQueryStrings: + def test_str_query_method(self, parser, engine): + df = DataFrame(np.random.default_rng(2).standard_normal((10, 1)), columns=["b"]) + df["strings"] = Series(list("aabbccddee")) + expect = df[df.strings == "a"] + + if parser != "pandas": + col = "strings" + lst = '"a"' + + lhs = [col] * 2 + [lst] * 2 + rhs = lhs[::-1] + + eq, ne = "==", "!=" + ops = 2 * ([eq] + [ne]) + msg = r"'(Not)?In' nodes are not implemented" + + for lhs, op, rhs in zip(lhs, ops, rhs): + ex = f"{lhs} {op} {rhs}" + with pytest.raises(NotImplementedError, match=msg): + df.query( + ex, + engine=engine, + parser=parser, + local_dict={"strings": df.strings}, + ) + else: + res = df.query('"a" == strings', engine=engine, parser=parser) + tm.assert_frame_equal(res, expect) + + res = df.query('strings == "a"', engine=engine, parser=parser) + tm.assert_frame_equal(res, expect) + tm.assert_frame_equal(res, df[df.strings.isin(["a"])]) + + expect = df[df.strings != "a"] + res = df.query('strings != "a"', engine=engine, parser=parser) + tm.assert_frame_equal(res, expect) + + res = df.query('"a" != strings', engine=engine, parser=parser) + tm.assert_frame_equal(res, expect) + tm.assert_frame_equal(res, df[~df.strings.isin(["a"])]) + + def test_str_list_query_method(self, parser, engine): + df = DataFrame(np.random.default_rng(2).standard_normal((10, 1)), columns=["b"]) + df["strings"] = Series(list("aabbccddee")) + expect = df[df.strings.isin(["a", "b"])] + + if parser != "pandas": + col = "strings" + lst = '["a", "b"]' + + lhs = [col] * 2 + [lst] * 2 + rhs = lhs[::-1] + + eq, ne = "==", "!=" + ops = 2 * ([eq] + [ne]) + msg = r"'(Not)?In' nodes are not implemented" + + for lhs, op, rhs in zip(lhs, ops, rhs): + ex = f"{lhs} {op} {rhs}" + with pytest.raises(NotImplementedError, match=msg): + df.query(ex, engine=engine, parser=parser) + else: + res = df.query('strings == ["a", "b"]', engine=engine, parser=parser) + tm.assert_frame_equal(res, expect) + + res = df.query('["a", "b"] == strings', engine=engine, parser=parser) + tm.assert_frame_equal(res, expect) + + expect = df[~df.strings.isin(["a", "b"])] + + res = df.query('strings != ["a", "b"]', engine=engine, parser=parser) + tm.assert_frame_equal(res, expect) + + res = df.query('["a", "b"] != strings', engine=engine, parser=parser) + tm.assert_frame_equal(res, expect) + + def test_query_with_string_columns(self, parser, engine): + df = DataFrame( + { + "a": list("aaaabbbbcccc"), + "b": list("aabbccddeeff"), + "c": np.random.default_rng(2).integers(5, size=12), + "d": np.random.default_rng(2).integers(9, size=12), + } + ) + if parser == "pandas": + res = df.query("a in b", parser=parser, engine=engine) + expec = df[df.a.isin(df.b)] + tm.assert_frame_equal(res, expec) + + res = df.query("a in b and c < d", parser=parser, engine=engine) + expec = df[df.a.isin(df.b) & (df.c < df.d)] + tm.assert_frame_equal(res, expec) + else: + msg = r"'(Not)?In' nodes are not implemented" + with pytest.raises(NotImplementedError, match=msg): + df.query("a in b", parser=parser, engine=engine) + + msg = r"'BoolOp' nodes are not implemented" + with pytest.raises(NotImplementedError, match=msg): + df.query("a in b and c < d", parser=parser, engine=engine) + + def test_object_array_eq_ne(self, parser, engine): + df = DataFrame( + { + "a": list("aaaabbbbcccc"), + "b": list("aabbccddeeff"), + "c": np.random.default_rng(2).integers(5, size=12), + "d": np.random.default_rng(2).integers(9, size=12), + } + ) + res = df.query("a == b", parser=parser, engine=engine) + exp = df[df.a == df.b] + tm.assert_frame_equal(res, exp) + + res = df.query("a != b", parser=parser, engine=engine) + exp = df[df.a != df.b] + tm.assert_frame_equal(res, exp) + + def test_query_with_nested_strings(self, parser, engine): + skip_if_no_pandas_parser(parser) + events = [ + f"page {n} {act}" for n in range(1, 4) for act in ["load", "exit"] + ] * 2 + stamps1 = date_range("2014-01-01 0:00:01", freq="30s", periods=6) + stamps2 = date_range("2014-02-01 1:00:01", freq="30s", periods=6) + df = DataFrame( + { + "id": np.arange(1, 7).repeat(2), + "event": events, + "timestamp": stamps1.append(stamps2), + } + ) + + expected = df[df.event == '"page 1 load"'] + res = df.query("""'"page 1 load"' in event""", parser=parser, engine=engine) + tm.assert_frame_equal(expected, res) + + def test_query_with_nested_special_character(self, parser, engine): + skip_if_no_pandas_parser(parser) + df = DataFrame({"a": ["a", "b", "test & test"], "b": [1, 2, 3]}) + res = df.query('a == "test & test"', parser=parser, engine=engine) + expec = df[df.a == "test & test"] + tm.assert_frame_equal(res, expec) + + @pytest.mark.parametrize( + "op, func", + [ + ["<", operator.lt], + [">", operator.gt], + ["<=", operator.le], + [">=", operator.ge], + ], + ) + def test_query_lex_compare_strings(self, parser, engine, op, func): + a = Series(np.random.default_rng(2).choice(list("abcde"), 20)) + b = Series(np.arange(a.size)) + df = DataFrame({"X": a, "Y": b}) + + res = df.query(f'X {op} "d"', engine=engine, parser=parser) + expected = df[func(df.X, "d")] + tm.assert_frame_equal(res, expected) + + def test_query_single_element_booleans(self, parser, engine): + columns = "bid", "bidsize", "ask", "asksize" + data = np.random.default_rng(2).integers(2, size=(1, len(columns))).astype(bool) + df = DataFrame(data, columns=columns) + res = df.query("bid & ask", engine=engine, parser=parser) + expected = df[df.bid & df.ask] + tm.assert_frame_equal(res, expected) + + def test_query_string_scalar_variable(self, parser, engine): + skip_if_no_pandas_parser(parser) + df = DataFrame( + { + "Symbol": ["BUD US", "BUD US", "IBM US", "IBM US"], + "Price": [109.70, 109.72, 183.30, 183.35], + } + ) + e = df[df.Symbol == "BUD US"] + symb = "BUD US" # noqa: F841 + r = df.query("Symbol == @symb", parser=parser, engine=engine) + tm.assert_frame_equal(e, r) + + @pytest.mark.parametrize( + "in_list", + [ + [None, "asdf", "ghjk"], + ["asdf", None, "ghjk"], + ["asdf", "ghjk", None], + [None, None, "asdf"], + ["asdf", None, None], + [None, None, None], + ], + ) + def test_query_string_null_elements(self, in_list): + # GITHUB ISSUE #31516 + parser = "pandas" + engine = "python" + expected = {i: value for i, value in enumerate(in_list) if value == "asdf"} + + df_expected = DataFrame({"a": expected}, dtype="string") + df_expected.index = df_expected.index.astype("int64") + df = DataFrame({"a": in_list}, dtype="string") + res1 = df.query("a == 'asdf'", parser=parser, engine=engine) + res2 = df[df["a"] == "asdf"] + res3 = df.query("a <= 'asdf'", parser=parser, engine=engine) + tm.assert_frame_equal(res1, df_expected) + tm.assert_frame_equal(res1, res2) + tm.assert_frame_equal(res1, res3) + tm.assert_frame_equal(res2, res3) + + +class TestDataFrameEvalWithFrame: + @pytest.fixture + def frame(self): + return DataFrame( + np.random.default_rng(2).standard_normal((10, 3)), columns=list("abc") + ) + + def test_simple_expr(self, frame, parser, engine): + res = frame.eval("a + b", engine=engine, parser=parser) + expect = frame.a + frame.b + tm.assert_series_equal(res, expect) + + def test_bool_arith_expr(self, frame, parser, engine): + res = frame.eval("a[a < 1] + b", engine=engine, parser=parser) + expect = frame.a[frame.a < 1] + frame.b + tm.assert_series_equal(res, expect) + + @pytest.mark.parametrize("op", ["+", "-", "*", "/"]) + def test_invalid_type_for_operator_raises(self, parser, engine, op): + df = DataFrame({"a": [1, 2], "b": ["c", "d"]}) + msg = r"unsupported operand type\(s\) for .+: '.+' and '.+'|Cannot" + + with pytest.raises(TypeError, match=msg): + df.eval(f"a {op} b", engine=engine, parser=parser) + + +class TestDataFrameQueryBacktickQuoting: + @pytest.fixture + def df(self): + """ + Yields a dataframe with strings that may or may not need escaping + by backticks. The last two columns cannot be escaped by backticks + and should raise a ValueError. + """ + yield DataFrame( + { + "A": [1, 2, 3], + "B B": [3, 2, 1], + "C C": [4, 5, 6], + "C C": [7, 4, 3], + "C_C": [8, 9, 10], + "D_D D": [11, 1, 101], + "E.E": [6, 3, 5], + "F-F": [8, 1, 10], + "1e1": [2, 4, 8], + "def": [10, 11, 2], + "A (x)": [4, 1, 3], + "B(x)": [1, 1, 5], + "B (x)": [2, 7, 4], + " &^ :!€$?(} > <++*'' ": [2, 5, 6], + "": [10, 11, 1], + " A": [4, 7, 9], + " ": [1, 2, 1], + "it's": [6, 3, 1], + "that's": [9, 1, 8], + "☺": [8, 7, 6], + "foo#bar": [2, 4, 5], + 1: [5, 7, 9], + } + ) + + def test_single_backtick_variable_query(self, df): + res = df.query("1 < `B B`") + expect = df[1 < df["B B"]] + tm.assert_frame_equal(res, expect) + + def test_two_backtick_variables_query(self, df): + res = df.query("1 < `B B` and 4 < `C C`") + expect = df[(1 < df["B B"]) & (4 < df["C C"])] + tm.assert_frame_equal(res, expect) + + def test_single_backtick_variable_expr(self, df): + res = df.eval("A + `B B`") + expect = df["A"] + df["B B"] + tm.assert_series_equal(res, expect) + + def test_two_backtick_variables_expr(self, df): + res = df.eval("`B B` + `C C`") + expect = df["B B"] + df["C C"] + tm.assert_series_equal(res, expect) + + def test_already_underscore_variable(self, df): + res = df.eval("`C_C` + A") + expect = df["C_C"] + df["A"] + tm.assert_series_equal(res, expect) + + def test_same_name_but_underscores(self, df): + res = df.eval("C_C + `C C`") + expect = df["C_C"] + df["C C"] + tm.assert_series_equal(res, expect) + + def test_mixed_underscores_and_spaces(self, df): + res = df.eval("A + `D_D D`") + expect = df["A"] + df["D_D D"] + tm.assert_series_equal(res, expect) + + def test_backtick_quote_name_with_no_spaces(self, df): + res = df.eval("A + `C_C`") + expect = df["A"] + df["C_C"] + tm.assert_series_equal(res, expect) + + def test_special_characters(self, df): + res = df.eval("`E.E` + `F-F` - A") + expect = df["E.E"] + df["F-F"] - df["A"] + tm.assert_series_equal(res, expect) + + def test_start_with_digit(self, df): + res = df.eval("A + `1e1`") + expect = df["A"] + df["1e1"] + tm.assert_series_equal(res, expect) + + def test_keyword(self, df): + res = df.eval("A + `def`") + expect = df["A"] + df["def"] + tm.assert_series_equal(res, expect) + + def test_unneeded_quoting(self, df): + res = df.query("`A` > 2") + expect = df[df["A"] > 2] + tm.assert_frame_equal(res, expect) + + def test_parenthesis(self, df): + res = df.query("`A (x)` > 2") + expect = df[df["A (x)"] > 2] + tm.assert_frame_equal(res, expect) + + def test_empty_string(self, df): + res = df.query("`` > 5") + expect = df[df[""] > 5] + tm.assert_frame_equal(res, expect) + + def test_multiple_spaces(self, df): + res = df.query("`C C` > 5") + expect = df[df["C C"] > 5] + tm.assert_frame_equal(res, expect) + + def test_start_with_spaces(self, df): + res = df.eval("` A` + ` `") + expect = df[" A"] + df[" "] + tm.assert_series_equal(res, expect) + + def test_lots_of_operators_string(self, df): + res = df.query("` &^ :!€$?(} > <++*'' ` > 4") + expect = df[df[" &^ :!€$?(} > <++*'' "] > 4] + tm.assert_frame_equal(res, expect) + + def test_missing_attribute(self, df): + message = "module 'pandas' has no attribute 'thing'" + with pytest.raises(AttributeError, match=message): + df.eval("@pd.thing") + + def test_failing_quote(self, df): + msg = r"(Could not convert ).*( to a valid Python identifier.)" + with pytest.raises(SyntaxError, match=msg): + df.query("`it's` > `that's`") + + def test_failing_character_outside_range(self, df): + msg = r"(Could not convert ).*( to a valid Python identifier.)" + with pytest.raises(SyntaxError, match=msg): + df.query("`☺` > 4") + + def test_failing_hashtag(self, df): + msg = "Failed to parse backticks" + with pytest.raises(SyntaxError, match=msg): + df.query("`foo#bar` > 4") + + def test_call_non_named_expression(self, df): + """ + Only attributes and variables ('named functions') can be called. + .__call__() is not an allowed attribute because that would allow + calling anything. + https://github.com/pandas-dev/pandas/pull/32460 + """ + + def func(*_): + return 1 + + funcs = [func] # noqa: F841 + + df.eval("@func()") + + with pytest.raises(TypeError, match="Only named functions are supported"): + df.eval("@funcs[0]()") + + with pytest.raises(TypeError, match="Only named functions are supported"): + df.eval("@funcs[0].__call__()") + + def test_ea_dtypes(self, any_numeric_ea_and_arrow_dtype): + # GH#29618 + df = DataFrame( + [[1, 2], [3, 4]], columns=["a", "b"], dtype=any_numeric_ea_and_arrow_dtype + ) + warning = RuntimeWarning if NUMEXPR_INSTALLED else None + with tm.assert_produces_warning(warning): + result = df.eval("c = b - a") + expected = DataFrame( + [[1, 2, 1], [3, 4, 1]], + columns=["a", "b", "c"], + dtype=any_numeric_ea_and_arrow_dtype, + ) + tm.assert_frame_equal(result, expected) + + def test_ea_dtypes_and_scalar(self): + # GH#29618 + df = DataFrame([[1, 2], [3, 4]], columns=["a", "b"], dtype="Float64") + warning = RuntimeWarning if NUMEXPR_INSTALLED else None + with tm.assert_produces_warning(warning): + result = df.eval("c = b - 1") + expected = DataFrame( + [[1, 2, 1], [3, 4, 3]], columns=["a", "b", "c"], dtype="Float64" + ) + tm.assert_frame_equal(result, expected) + + def test_ea_dtypes_and_scalar_operation(self, any_numeric_ea_and_arrow_dtype): + # GH#29618 + df = DataFrame( + [[1, 2], [3, 4]], columns=["a", "b"], dtype=any_numeric_ea_and_arrow_dtype + ) + result = df.eval("c = 2 - 1") + expected = DataFrame( + { + "a": Series([1, 3], dtype=any_numeric_ea_and_arrow_dtype), + "b": Series([2, 4], dtype=any_numeric_ea_and_arrow_dtype), + "c": Series([1, 1], dtype=result["c"].dtype), + } + ) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("dtype", ["int64", "Int64", "int64[pyarrow]"]) + def test_query_ea_dtypes(self, dtype): + if dtype == "int64[pyarrow]": + pytest.importorskip("pyarrow") + # GH#50261 + df = DataFrame({"a": Series([1, 2], dtype=dtype)}) + ref = {2} # noqa: F841 + warning = RuntimeWarning if dtype == "Int64" and NUMEXPR_INSTALLED else None + with tm.assert_produces_warning(warning): + result = df.query("a in @ref") + expected = DataFrame({"a": Series([2], dtype=dtype, index=[1])}) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("engine", ["python", "numexpr"]) + @pytest.mark.parametrize("dtype", ["int64", "Int64", "int64[pyarrow]"]) + def test_query_ea_equality_comparison(self, dtype, engine): + # GH#50261 + warning = RuntimeWarning if engine == "numexpr" else None + if engine == "numexpr" and not NUMEXPR_INSTALLED: + pytest.skip("numexpr not installed") + if dtype == "int64[pyarrow]": + pytest.importorskip("pyarrow") + df = DataFrame( + {"A": Series([1, 1, 2], dtype="Int64"), "B": Series([1, 2, 2], dtype=dtype)} + ) + with tm.assert_produces_warning(warning): + result = df.query("A == B", engine=engine) + expected = DataFrame( + { + "A": Series([1, 2], dtype="Int64", index=[0, 2]), + "B": Series([1, 2], dtype=dtype, index=[0, 2]), + } + ) + tm.assert_frame_equal(result, expected) + + def test_all_nat_in_object(self): + # GH#57068 + now = pd.Timestamp.now("UTC") # noqa: F841 + df = DataFrame({"a": pd.to_datetime([None, None], utc=True)}, dtype=object) + result = df.query("a > @now") + expected = DataFrame({"a": []}, dtype=object) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_reductions.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_reductions.py new file mode 100644 index 0000000000000000000000000000000000000000..8b450cecfca00f0d82195d64a48a2f4e617c7660 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_reductions.py @@ -0,0 +1,2133 @@ +from datetime import timedelta +from decimal import Decimal +import re + +from dateutil.tz import tzlocal +import numpy as np +import pytest + +from pandas.compat import ( + IS64, + is_platform_windows, +) +from pandas.compat.numpy import np_version_gt2 +import pandas.util._test_decorators as td + +import pandas as pd +from pandas import ( + Categorical, + CategoricalDtype, + DataFrame, + DatetimeIndex, + Index, + PeriodIndex, + RangeIndex, + Series, + Timestamp, + date_range, + isna, + notna, + to_datetime, + to_timedelta, +) +import pandas._testing as tm +from pandas.core import ( + algorithms, + nanops, +) + +is_windows_np2_or_is32 = (is_platform_windows() and not np_version_gt2) or not IS64 +is_windows_or_is32 = is_platform_windows() or not IS64 + + +def make_skipna_wrapper(alternative, skipna_alternative=None): + """ + Create a function for calling on an array. + + Parameters + ---------- + alternative : function + The function to be called on the array with no NaNs. + Only used when 'skipna_alternative' is None. + skipna_alternative : function + The function to be called on the original array + + Returns + ------- + function + """ + if skipna_alternative: + + def skipna_wrapper(x): + return skipna_alternative(x.values) + + else: + + def skipna_wrapper(x): + nona = x.dropna() + if len(nona) == 0: + return np.nan + return alternative(nona) + + return skipna_wrapper + + +def assert_stat_op_calc( + opname, + alternative, + frame, + has_skipna=True, + check_dtype=True, + check_dates=False, + rtol=1e-5, + atol=1e-8, + skipna_alternative=None, +): + """ + Check that operator opname works as advertised on frame + + Parameters + ---------- + opname : str + Name of the operator to test on frame + alternative : function + Function that opname is tested against; i.e. "frame.opname()" should + equal "alternative(frame)". + frame : DataFrame + The object that the tests are executed on + has_skipna : bool, default True + Whether the method "opname" has the kwarg "skip_na" + check_dtype : bool, default True + Whether the dtypes of the result of "frame.opname()" and + "alternative(frame)" should be checked. + check_dates : bool, default false + Whether opname should be tested on a Datetime Series + rtol : float, default 1e-5 + Relative tolerance. + atol : float, default 1e-8 + Absolute tolerance. + skipna_alternative : function, default None + NaN-safe version of alternative + """ + f = getattr(frame, opname) + + if check_dates: + df = DataFrame({"b": date_range("1/1/2001", periods=2)}) + with tm.assert_produces_warning(None): + result = getattr(df, opname)() + assert isinstance(result, Series) + + df["a"] = range(len(df)) + with tm.assert_produces_warning(None): + result = getattr(df, opname)() + assert isinstance(result, Series) + assert len(result) + + if has_skipna: + + def wrapper(x): + return alternative(x.values) + + skipna_wrapper = make_skipna_wrapper(alternative, skipna_alternative) + result0 = f(axis=0, skipna=False) + result1 = f(axis=1, skipna=False) + tm.assert_series_equal( + result0, frame.apply(wrapper), check_dtype=check_dtype, rtol=rtol, atol=atol + ) + tm.assert_series_equal( + result1, + frame.apply(wrapper, axis=1), + rtol=rtol, + atol=atol, + ) + else: + skipna_wrapper = alternative + + result0 = f(axis=0) + result1 = f(axis=1) + tm.assert_series_equal( + result0, + frame.apply(skipna_wrapper), + check_dtype=check_dtype, + rtol=rtol, + atol=atol, + ) + + if opname in ["sum", "prod"]: + expected = frame.apply(skipna_wrapper, axis=1) + tm.assert_series_equal( + result1, expected, check_dtype=False, rtol=rtol, atol=atol + ) + + # check dtypes + if check_dtype: + lcd_dtype = frame.values.dtype + assert lcd_dtype == result0.dtype + assert lcd_dtype == result1.dtype + + # bad axis + with pytest.raises(ValueError, match="No axis named 2"): + f(axis=2) + + # all NA case + if has_skipna: + all_na = frame * np.nan + r0 = getattr(all_na, opname)(axis=0) + r1 = getattr(all_na, opname)(axis=1) + if opname in ["sum", "prod"]: + unit = 1 if opname == "prod" else 0 # result for empty sum/prod + expected = Series(unit, index=r0.index, dtype=r0.dtype) + tm.assert_series_equal(r0, expected) + expected = Series(unit, index=r1.index, dtype=r1.dtype) + tm.assert_series_equal(r1, expected) + + +@pytest.fixture +def bool_frame_with_na(): + """ + Fixture for DataFrame of booleans with index of unique strings + + Columns are ['A', 'B', 'C', 'D']; some entries are missing + """ + df = DataFrame( + np.concatenate( + [np.ones((15, 4), dtype=bool), np.zeros((15, 4), dtype=bool)], axis=0 + ), + index=Index([f"foo_{i}" for i in range(30)], dtype=object), + columns=Index(list("ABCD"), dtype=object), + dtype=object, + ) + # set some NAs + df.iloc[5:10] = np.nan + df.iloc[15:20, -2:] = np.nan + return df + + +@pytest.fixture +def float_frame_with_na(): + """ + Fixture for DataFrame of floats with index of unique strings + + Columns are ['A', 'B', 'C', 'D']; some entries are missing + """ + df = DataFrame( + np.random.default_rng(2).standard_normal((30, 4)), + index=Index([f"foo_{i}" for i in range(30)], dtype=object), + columns=Index(list("ABCD"), dtype=object), + ) + # set some NAs + df.iloc[5:10] = np.nan + df.iloc[15:20, -2:] = np.nan + return df + + +class TestDataFrameAnalytics: + # --------------------------------------------------------------------- + # Reductions + @pytest.mark.parametrize("axis", [0, 1]) + @pytest.mark.parametrize( + "opname", + [ + "count", + "sum", + "mean", + "product", + "median", + "min", + "max", + "nunique", + "var", + "std", + "sem", + pytest.param("skew", marks=td.skip_if_no("scipy")), + pytest.param("kurt", marks=td.skip_if_no("scipy")), + ], + ) + def test_stat_op_api_float_string_frame(self, float_string_frame, axis, opname): + if (opname in ("sum", "min", "max") and axis == 0) or opname in ( + "count", + "nunique", + ): + getattr(float_string_frame, opname)(axis=axis) + else: + if opname in ["var", "std", "sem", "skew", "kurt"]: + msg = "could not convert string to float: 'bar'" + elif opname == "product": + if axis == 1: + msg = "can't multiply sequence by non-int of type 'float'" + else: + msg = "can't multiply sequence by non-int of type 'str'" + elif opname == "sum": + msg = r"unsupported operand type\(s\) for \+: 'float' and 'str'" + elif opname == "mean": + if axis == 0: + # different message on different builds + msg = "|".join( + [ + r"Could not convert \['.*'\] to numeric", + "Could not convert string '(bar){30}' to numeric", + ] + ) + else: + msg = r"unsupported operand type\(s\) for \+: 'float' and 'str'" + elif opname in ["min", "max"]: + msg = "'[><]=' not supported between instances of 'float' and 'str'" + elif opname == "median": + msg = re.compile( + r"Cannot convert \[.*\] to numeric|does not support|Cannot perform", + flags=re.S, + ) + if not isinstance(msg, re.Pattern): + msg = msg + "|does not support|Cannot perform reduction" + with pytest.raises(TypeError, match=msg): + getattr(float_string_frame, opname)(axis=axis) + if opname != "nunique": + getattr(float_string_frame, opname)(axis=axis, numeric_only=True) + + @pytest.mark.parametrize("axis", [0, 1]) + @pytest.mark.parametrize( + "opname", + [ + "count", + "sum", + "mean", + "product", + "median", + "min", + "max", + "var", + "std", + "sem", + pytest.param("skew", marks=td.skip_if_no("scipy")), + pytest.param("kurt", marks=td.skip_if_no("scipy")), + ], + ) + def test_stat_op_api_float_frame(self, float_frame, axis, opname): + getattr(float_frame, opname)(axis=axis, numeric_only=False) + + def test_stat_op_calc(self, float_frame_with_na, mixed_float_frame): + def count(s): + return notna(s).sum() + + def nunique(s): + return len(algorithms.unique1d(s.dropna())) + + def var(x): + return np.var(x, ddof=1) + + def std(x): + return np.std(x, ddof=1) + + def sem(x): + return np.std(x, ddof=1) / np.sqrt(len(x)) + + assert_stat_op_calc( + "nunique", + nunique, + float_frame_with_na, + has_skipna=False, + check_dtype=False, + check_dates=True, + ) + + # GH#32571: rol needed for flaky CI builds + # mixed types (with upcasting happening) + assert_stat_op_calc( + "sum", + np.sum, + mixed_float_frame.astype("float32"), + check_dtype=False, + rtol=1e-3, + ) + + assert_stat_op_calc( + "sum", np.sum, float_frame_with_na, skipna_alternative=np.nansum + ) + assert_stat_op_calc("mean", np.mean, float_frame_with_na, check_dates=True) + assert_stat_op_calc( + "product", np.prod, float_frame_with_na, skipna_alternative=np.nanprod + ) + + assert_stat_op_calc("var", var, float_frame_with_na) + assert_stat_op_calc("std", std, float_frame_with_na) + assert_stat_op_calc("sem", sem, float_frame_with_na) + + assert_stat_op_calc( + "count", + count, + float_frame_with_na, + has_skipna=False, + check_dtype=False, + check_dates=True, + ) + + def test_stat_op_calc_skew_kurtosis(self, float_frame_with_na): + sp_stats = pytest.importorskip("scipy.stats") + + def skewness(x): + if len(x) < 3: + return np.nan + return sp_stats.skew(x, bias=False) + + def kurt(x): + if len(x) < 4: + return np.nan + return sp_stats.kurtosis(x, bias=False) + + assert_stat_op_calc("skew", skewness, float_frame_with_na) + assert_stat_op_calc("kurt", kurt, float_frame_with_na) + + def test_median(self, float_frame_with_na, int_frame): + def wrapper(x): + if isna(x).any(): + return np.nan + return np.median(x) + + assert_stat_op_calc("median", wrapper, float_frame_with_na, check_dates=True) + assert_stat_op_calc( + "median", wrapper, int_frame, check_dtype=False, check_dates=True + ) + + @pytest.mark.parametrize( + "method", ["sum", "mean", "prod", "var", "std", "skew", "min", "max"] + ) + @pytest.mark.parametrize( + "df", + [ + DataFrame( + { + "a": [ + -0.00049987540199591344, + -0.0016467257772919831, + 0.00067695870775883013, + ], + "b": [-0, -0, 0.0], + "c": [ + 0.00031111847529610595, + 0.0014902627951905339, + -0.00094099200035979691, + ], + }, + index=["foo", "bar", "baz"], + dtype="O", + ), + DataFrame({0: [np.nan, 2], 1: [np.nan, 3], 2: [np.nan, 4]}, dtype=object), + ], + ) + @pytest.mark.filterwarnings("ignore:Mismatched null-like values:FutureWarning") + def test_stat_operators_attempt_obj_array(self, method, df, axis): + # GH#676 + assert df.values.dtype == np.object_ + result = getattr(df, method)(axis=axis) + expected = getattr(df.astype("f8"), method)(axis=axis).astype(object) + if axis in [1, "columns"] and method in ["min", "max"]: + expected[expected.isna()] = None + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("op", ["mean", "std", "var", "skew", "kurt", "sem"]) + def test_mixed_ops(self, op): + # GH#16116 + df = DataFrame( + { + "int": [1, 2, 3, 4], + "float": [1.0, 2.0, 3.0, 4.0], + "str": ["a", "b", "c", "d"], + } + ) + msg = "|".join( + [ + "Could not convert", + "could not convert", + "can't multiply sequence by non-int", + "does not support", + "Cannot perform", + ] + ) + with pytest.raises(TypeError, match=msg): + getattr(df, op)() + + with pd.option_context("use_bottleneck", False): + with pytest.raises(TypeError, match=msg): + getattr(df, op)() + + def test_reduce_mixed_frame(self): + # GH 6806 + df = DataFrame( + { + "bool_data": [True, True, False, False, False], + "int_data": [10, 20, 30, 40, 50], + "string_data": ["a", "b", "c", "d", "e"], + } + ) + df.reindex(columns=["bool_data", "int_data", "string_data"]) + test = df.sum(axis=0) + tm.assert_numpy_array_equal( + test.values, np.array([2, 150, "abcde"], dtype=object) + ) + alt = df.T.sum(axis=1) + tm.assert_series_equal(test, alt) + + def test_nunique(self): + df = DataFrame({"A": [1, 1, 1], "B": [1, 2, 3], "C": [1, np.nan, 3]}) + tm.assert_series_equal(df.nunique(), Series({"A": 1, "B": 3, "C": 2})) + tm.assert_series_equal( + df.nunique(dropna=False), Series({"A": 1, "B": 3, "C": 3}) + ) + tm.assert_series_equal(df.nunique(axis=1), Series({0: 1, 1: 2, 2: 2})) + tm.assert_series_equal( + df.nunique(axis=1, dropna=False), Series({0: 1, 1: 3, 2: 2}) + ) + + @pytest.mark.parametrize("tz", [None, "UTC"]) + def test_mean_mixed_datetime_numeric(self, tz): + # https://github.com/pandas-dev/pandas/issues/24752 + df = DataFrame({"A": [1, 1], "B": [Timestamp("2000", tz=tz)] * 2}) + result = df.mean() + expected = Series([1.0, Timestamp("2000", tz=tz)], index=["A", "B"]) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("tz", [None, "UTC"]) + def test_mean_includes_datetimes(self, tz): + # https://github.com/pandas-dev/pandas/issues/24752 + # Behavior in 0.24.0rc1 was buggy. + # As of 2.0 with numeric_only=None we do *not* drop datetime columns + df = DataFrame({"A": [Timestamp("2000", tz=tz)] * 2}) + result = df.mean() + + expected = Series([Timestamp("2000", tz=tz)], index=["A"]) + tm.assert_series_equal(result, expected) + + def test_mean_mixed_string_decimal(self): + # GH 11670 + # possible bug when calculating mean of DataFrame? + + d = [ + {"A": 2, "B": None, "C": Decimal("628.00")}, + {"A": 1, "B": None, "C": Decimal("383.00")}, + {"A": 3, "B": None, "C": Decimal("651.00")}, + {"A": 2, "B": None, "C": Decimal("575.00")}, + {"A": 4, "B": None, "C": Decimal("1114.00")}, + {"A": 1, "B": "TEST", "C": Decimal("241.00")}, + {"A": 2, "B": None, "C": Decimal("572.00")}, + {"A": 4, "B": None, "C": Decimal("609.00")}, + {"A": 3, "B": None, "C": Decimal("820.00")}, + {"A": 5, "B": None, "C": Decimal("1223.00")}, + ] + + df = DataFrame(d) + + with pytest.raises( + TypeError, match="unsupported operand type|does not support|Cannot perform" + ): + df.mean() + result = df[["A", "C"]].mean() + expected = Series([2.7, 681.6], index=["A", "C"], dtype=object) + tm.assert_series_equal(result, expected) + + def test_var_std(self, datetime_frame): + result = datetime_frame.std(ddof=4) + expected = datetime_frame.apply(lambda x: x.std(ddof=4)) + tm.assert_almost_equal(result, expected) + + result = datetime_frame.var(ddof=4) + expected = datetime_frame.apply(lambda x: x.var(ddof=4)) + tm.assert_almost_equal(result, expected) + + arr = np.repeat(np.random.default_rng(2).random((1, 1000)), 1000, 0) + result = nanops.nanvar(arr, axis=0) + assert not (result < 0).any() + + with pd.option_context("use_bottleneck", False): + result = nanops.nanvar(arr, axis=0) + assert not (result < 0).any() + + @pytest.mark.parametrize("meth", ["sem", "var", "std"]) + def test_numeric_only_flag(self, meth): + # GH 9201 + df1 = DataFrame( + np.random.default_rng(2).standard_normal((5, 3)), + columns=["foo", "bar", "baz"], + ) + # Cast to object to avoid implicit cast when setting entry to "100" below + df1 = df1.astype({"foo": object}) + # set one entry to a number in str format + df1.loc[0, "foo"] = "100" + + df2 = DataFrame( + np.random.default_rng(2).standard_normal((5, 3)), + columns=["foo", "bar", "baz"], + ) + # Cast to object to avoid implicit cast when setting entry to "a" below + df2 = df2.astype({"foo": object}) + # set one entry to a non-number str + df2.loc[0, "foo"] = "a" + + result = getattr(df1, meth)(axis=1, numeric_only=True) + expected = getattr(df1[["bar", "baz"]], meth)(axis=1) + tm.assert_series_equal(expected, result) + + result = getattr(df2, meth)(axis=1, numeric_only=True) + expected = getattr(df2[["bar", "baz"]], meth)(axis=1) + tm.assert_series_equal(expected, result) + + # df1 has all numbers, df2 has a letter inside + msg = r"unsupported operand type\(s\) for -: 'float' and 'str'" + with pytest.raises(TypeError, match=msg): + getattr(df1, meth)(axis=1, numeric_only=False) + msg = "could not convert string to float: 'a'" + with pytest.raises(TypeError, match=msg): + getattr(df2, meth)(axis=1, numeric_only=False) + + def test_sem(self, datetime_frame): + result = datetime_frame.sem(ddof=4) + expected = datetime_frame.apply(lambda x: x.std(ddof=4) / np.sqrt(len(x))) + tm.assert_almost_equal(result, expected) + + arr = np.repeat(np.random.default_rng(2).random((1, 1000)), 1000, 0) + result = nanops.nansem(arr, axis=0) + assert not (result < 0).any() + + with pd.option_context("use_bottleneck", False): + result = nanops.nansem(arr, axis=0) + assert not (result < 0).any() + + @pytest.mark.parametrize( + "dropna, expected", + [ + ( + True, + { + "A": [12], + "B": [10.0], + "C": [1.0], + "D": ["a"], + "E": Categorical(["a"], categories=["a"]), + "F": DatetimeIndex(["2000-01-02"], dtype="M8[ns]"), + "G": to_timedelta(["1 days"]), + }, + ), + ( + False, + { + "A": [12], + "B": [10.0], + "C": [np.nan], + "D": Series([np.nan], dtype="str"), + "E": Categorical([np.nan], categories=["a"]), + "F": DatetimeIndex([pd.NaT], dtype="M8[ns]"), + "G": to_timedelta([pd.NaT]), + }, + ), + ( + True, + { + "H": [8, 9, np.nan, np.nan], + "I": [8, 9, np.nan, np.nan], + "J": [1, np.nan, np.nan, np.nan], + "K": Categorical(["a", np.nan, np.nan, np.nan], categories=["a"]), + "L": DatetimeIndex( + ["2000-01-02", "NaT", "NaT", "NaT"], dtype="M8[ns]" + ), + "M": to_timedelta(["1 days", "nan", "nan", "nan"]), + "N": [0, 1, 2, 3], + }, + ), + ( + False, + { + "H": [8, 9, np.nan, np.nan], + "I": [8, 9, np.nan, np.nan], + "J": [1, np.nan, np.nan, np.nan], + "K": Categorical([np.nan, "a", np.nan, np.nan], categories=["a"]), + "L": DatetimeIndex( + ["NaT", "2000-01-02", "NaT", "NaT"], dtype="M8[ns]" + ), + "M": to_timedelta(["nan", "1 days", "nan", "nan"]), + "N": [0, 1, 2, 3], + }, + ), + ], + ) + def test_mode_dropna(self, dropna, expected): + df = DataFrame( + { + "A": [12, 12, 19, 11], + "B": [10, 10, np.nan, 3], + "C": [1, np.nan, np.nan, np.nan], + "D": Series([np.nan, np.nan, "a", np.nan], dtype="str"), + "E": Categorical([np.nan, np.nan, "a", np.nan]), + "F": DatetimeIndex(["NaT", "2000-01-02", "NaT", "NaT"], dtype="M8[ns]"), + "G": to_timedelta(["1 days", "nan", "nan", "nan"]), + "H": [8, 8, 9, 9], + "I": [9, 9, 8, 8], + "J": [1, 1, np.nan, np.nan], + "K": Categorical(["a", np.nan, "a", np.nan]), + "L": DatetimeIndex( + ["2000-01-02", "2000-01-02", "NaT", "NaT"], dtype="M8[ns]" + ), + "M": to_timedelta(["1 days", "nan", "1 days", "nan"]), + "N": np.arange(4, dtype="int64"), + } + ) + + result = df[sorted(expected.keys())].mode(dropna=dropna) + expected = DataFrame(expected) + tm.assert_frame_equal(result, expected) + + def test_mode_sort_with_na(self, using_infer_string): + df = DataFrame({"A": [np.nan, np.nan, "a", "a"]}) + expected = DataFrame({"A": ["a", np.nan]}) + result = df.mode(dropna=False) + tm.assert_frame_equal(result, expected) + + def test_mode_empty_df(self): + df = DataFrame([], columns=["a", "b"]) + result = df.mode() + expected = DataFrame([], columns=["a", "b"], index=Index([], dtype=np.int64)) + tm.assert_frame_equal(result, expected) + + def test_operators_timedelta64(self): + df = DataFrame( + { + "A": date_range("2012-1-1", periods=3, freq="D"), + "B": date_range("2012-1-2", periods=3, freq="D"), + "C": Timestamp("20120101") - timedelta(minutes=5, seconds=5), + } + ) + + diffs = DataFrame({"A": df["A"] - df["C"], "B": df["A"] - df["B"]}) + + # min + result = diffs.min() + assert result.iloc[0] == diffs.loc[0, "A"] + assert result.iloc[1] == diffs.loc[0, "B"] + + result = diffs.min(axis=1) + assert (result == diffs.loc[0, "B"]).all() + + # max + result = diffs.max() + assert result.iloc[0] == diffs.loc[2, "A"] + assert result.iloc[1] == diffs.loc[2, "B"] + + result = diffs.max(axis=1) + assert (result == diffs["A"]).all() + + # abs + result = diffs.abs() + result2 = abs(diffs) + expected = DataFrame({"A": df["A"] - df["C"], "B": df["B"] - df["A"]}) + tm.assert_frame_equal(result, expected) + tm.assert_frame_equal(result2, expected) + + # mixed frame + mixed = diffs.copy() + mixed["C"] = "foo" + mixed["D"] = 1 + mixed["E"] = 1.0 + mixed["F"] = Timestamp("20130101") + + # results in an object array + result = mixed.min() + expected = Series( + [ + pd.Timedelta(timedelta(seconds=5 * 60 + 5)), + pd.Timedelta(timedelta(days=-1)), + "foo", + 1, + 1.0, + Timestamp("20130101"), + ], + index=mixed.columns, + ) + tm.assert_series_equal(result, expected) + + # excludes non-numeric + result = mixed.min(axis=1, numeric_only=True) + expected = Series([1, 1, 1.0], index=[0, 1, 2]) + tm.assert_series_equal(result, expected) + + # works when only those columns are selected + result = mixed[["A", "B"]].min(1) + expected = Series([timedelta(days=-1)] * 3) + tm.assert_series_equal(result, expected) + + result = mixed[["A", "B"]].min() + expected = Series( + [timedelta(seconds=5 * 60 + 5), timedelta(days=-1)], index=["A", "B"] + ) + tm.assert_series_equal(result, expected) + + # GH 3106 + df = DataFrame( + { + "time": date_range("20130102", periods=5), + "time2": date_range("20130105", periods=5), + } + ) + df["off1"] = df["time2"] - df["time"] + assert df["off1"].dtype == "timedelta64[ns]" + + df["off2"] = df["time"] - df["time2"] + df._consolidate_inplace() + assert df["off1"].dtype == "timedelta64[ns]" + assert df["off2"].dtype == "timedelta64[ns]" + + def test_std_timedelta64_skipna_false(self): + # GH#37392 + tdi = pd.timedelta_range("1 Day", periods=10) + df = DataFrame({"A": tdi, "B": tdi}, copy=True) + df.iloc[-2, -1] = pd.NaT + + result = df.std(skipna=False) + expected = Series( + [df["A"].std(), pd.NaT], index=["A", "B"], dtype="timedelta64[ns]" + ) + tm.assert_series_equal(result, expected) + + result = df.std(axis=1, skipna=False) + expected = Series([pd.Timedelta(0)] * 8 + [pd.NaT, pd.Timedelta(0)]) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize( + "values", [["2022-01-01", "2022-01-02", pd.NaT, "2022-01-03"], 4 * [pd.NaT]] + ) + def test_std_datetime64_with_nat( + self, values, skipna, using_array_manager, request, unit + ): + # GH#51335 + if using_array_manager and ( + not skipna or all(value is pd.NaT for value in values) + ): + mark = pytest.mark.xfail( + reason="GH#51446: Incorrect type inference on NaT in reduction result" + ) + request.applymarker(mark) + dti = to_datetime(values).as_unit(unit) + df = DataFrame({"a": dti}) + result = df.std(skipna=skipna) + if not skipna or all(value is pd.NaT for value in values): + expected = Series({"a": pd.NaT}, dtype=f"timedelta64[{unit}]") + else: + # 86400000000000ns == 1 day + expected = Series({"a": 86400000000000}, dtype=f"timedelta64[{unit}]") + tm.assert_series_equal(result, expected) + + def test_sum_corner(self): + empty_frame = DataFrame() + + axis0 = empty_frame.sum(0) + axis1 = empty_frame.sum(1) + assert isinstance(axis0, Series) + assert isinstance(axis1, Series) + assert len(axis0) == 0 + assert len(axis1) == 0 + + @pytest.mark.parametrize( + "index", + [ + RangeIndex(0), + DatetimeIndex([]), + Index([], dtype=np.int64), + Index([], dtype=np.float64), + DatetimeIndex([], freq="ME"), + PeriodIndex([], freq="D"), + ], + ) + def test_axis_1_empty(self, all_reductions, index): + df = DataFrame(columns=["a"], index=index) + result = getattr(df, all_reductions)(axis=1) + if all_reductions in ("any", "all"): + expected_dtype = "bool" + elif all_reductions == "count": + expected_dtype = "int64" + else: + expected_dtype = "object" + expected = Series([], index=index, dtype=expected_dtype) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("min_count", [0, 1]) + def test_axis_1_sum_na(self, string_dtype_no_object, skipna, min_count): + # https://github.com/pandas-dev/pandas/issues/60229 + dtype = string_dtype_no_object + df = DataFrame({"a": [pd.NA]}, dtype=dtype) + result = df.sum(axis=1, skipna=skipna, min_count=min_count) + value = "" if skipna and min_count == 0 else pd.NA + expected = Series([value], dtype=dtype) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("method, unit", [("sum", 0), ("prod", 1)]) + @pytest.mark.parametrize("numeric_only", [None, True, False]) + def test_sum_prod_nanops(self, method, unit, numeric_only): + idx = ["a", "b", "c"] + df = DataFrame({"a": [unit, unit], "b": [unit, np.nan], "c": [np.nan, np.nan]}) + # The default + result = getattr(df, method)(numeric_only=numeric_only) + expected = Series([unit, unit, unit], index=idx, dtype="float64") + tm.assert_series_equal(result, expected) + + # min_count=1 + result = getattr(df, method)(numeric_only=numeric_only, min_count=1) + expected = Series([unit, unit, np.nan], index=idx) + tm.assert_series_equal(result, expected) + + # min_count=0 + result = getattr(df, method)(numeric_only=numeric_only, min_count=0) + expected = Series([unit, unit, unit], index=idx, dtype="float64") + tm.assert_series_equal(result, expected) + + result = getattr(df.iloc[1:], method)(numeric_only=numeric_only, min_count=1) + expected = Series([unit, np.nan, np.nan], index=idx) + tm.assert_series_equal(result, expected) + + # min_count > 1 + df = DataFrame({"A": [unit] * 10, "B": [unit] * 5 + [np.nan] * 5}) + result = getattr(df, method)(numeric_only=numeric_only, min_count=5) + expected = Series(result, index=["A", "B"]) + tm.assert_series_equal(result, expected) + + result = getattr(df, method)(numeric_only=numeric_only, min_count=6) + expected = Series(result, index=["A", "B"]) + tm.assert_series_equal(result, expected) + + def test_sum_nanops_timedelta(self): + # prod isn't defined on timedeltas + idx = ["a", "b", "c"] + df = DataFrame({"a": [0, 0], "b": [0, np.nan], "c": [np.nan, np.nan]}) + + df2 = df.apply(to_timedelta) + + # 0 by default + result = df2.sum() + expected = Series([0, 0, 0], dtype="m8[ns]", index=idx) + tm.assert_series_equal(result, expected) + + # min_count=0 + result = df2.sum(min_count=0) + tm.assert_series_equal(result, expected) + + # min_count=1 + result = df2.sum(min_count=1) + expected = Series([0, 0, np.nan], dtype="m8[ns]", index=idx) + tm.assert_series_equal(result, expected) + + def test_sum_nanops_min_count(self): + # https://github.com/pandas-dev/pandas/issues/39738 + df = DataFrame({"x": [1, 2, 3], "y": [4, 5, 6]}) + result = df.sum(min_count=10) + expected = Series([np.nan, np.nan], index=["x", "y"]) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("float_type", ["float16", "float32", "float64"]) + @pytest.mark.parametrize( + "kwargs, expected_result", + [ + ({"axis": 1, "min_count": 2}, [3.2, 5.3, np.nan]), + ({"axis": 1, "min_count": 3}, [np.nan, np.nan, np.nan]), + ({"axis": 1, "skipna": False}, [3.2, 5.3, np.nan]), + ], + ) + def test_sum_nanops_dtype_min_count(self, float_type, kwargs, expected_result): + # GH#46947 + df = DataFrame({"a": [1.0, 2.3, 4.4], "b": [2.2, 3, np.nan]}, dtype=float_type) + result = df.sum(**kwargs) + expected = Series(expected_result).astype(float_type) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("float_type", ["float16", "float32", "float64"]) + @pytest.mark.parametrize( + "kwargs, expected_result", + [ + ({"axis": 1, "min_count": 2}, [2.0, 4.0, np.nan]), + ({"axis": 1, "min_count": 3}, [np.nan, np.nan, np.nan]), + ({"axis": 1, "skipna": False}, [2.0, 4.0, np.nan]), + ], + ) + def test_prod_nanops_dtype_min_count(self, float_type, kwargs, expected_result): + # GH#46947 + df = DataFrame( + {"a": [1.0, 2.0, 4.4], "b": [2.0, 2.0, np.nan]}, dtype=float_type + ) + result = df.prod(**kwargs) + expected = Series(expected_result).astype(float_type) + tm.assert_series_equal(result, expected) + + def test_sum_object(self, float_frame): + values = float_frame.values.astype(int) + frame = DataFrame(values, index=float_frame.index, columns=float_frame.columns) + deltas = frame * timedelta(1) + deltas.sum() + + def test_sum_bool(self, float_frame): + # ensure this works, bug report + bools = np.isnan(float_frame) + bools.sum(1) + bools.sum(0) + + def test_sum_mixed_datetime(self): + # GH#30886 + df = DataFrame({"A": date_range("2000", periods=4), "B": [1, 2, 3, 4]}).reindex( + [2, 3, 4] + ) + with pytest.raises(TypeError, match="does not support reduction 'sum'"): + df.sum() + + def test_mean_corner(self, float_frame, float_string_frame): + # unit test when have object data + msg = "Could not convert|does not support|Cannot perform" + with pytest.raises(TypeError, match=msg): + float_string_frame.mean(axis=0) + + # xs sum mixed type, just want to know it works... + with pytest.raises(TypeError, match="unsupported operand type"): + float_string_frame.mean(axis=1) + + # take mean of boolean column + float_frame["bool"] = float_frame["A"] > 0 + means = float_frame.mean(0) + assert means["bool"] == float_frame["bool"].values.mean() + + def test_mean_datetimelike(self): + # GH#24757 check that datetimelike are excluded by default, handled + # correctly with numeric_only=True + # As of 2.0, datetimelike are *not* excluded with numeric_only=None + + df = DataFrame( + { + "A": np.arange(3), + "B": date_range("2016-01-01", periods=3), + "C": pd.timedelta_range("1D", periods=3), + "D": pd.period_range("2016", periods=3, freq="Y"), + } + ) + result = df.mean(numeric_only=True) + expected = Series({"A": 1.0}) + tm.assert_series_equal(result, expected) + + with pytest.raises(TypeError, match="mean is not implemented for PeriodArray"): + df.mean() + + def test_mean_datetimelike_numeric_only_false(self): + df = DataFrame( + { + "A": np.arange(3), + "B": date_range("2016-01-01", periods=3), + "C": pd.timedelta_range("1D", periods=3), + } + ) + + # datetime(tz) and timedelta work + result = df.mean(numeric_only=False) + expected = Series({"A": 1, "B": df.loc[1, "B"], "C": df.loc[1, "C"]}) + tm.assert_series_equal(result, expected) + + # mean of period is not allowed + df["D"] = pd.period_range("2016", periods=3, freq="Y") + + with pytest.raises(TypeError, match="mean is not implemented for Period"): + df.mean(numeric_only=False) + + def test_mean_extensionarray_numeric_only_true(self): + # https://github.com/pandas-dev/pandas/issues/33256 + arr = np.random.default_rng(2).integers(1000, size=(10, 5)) + df = DataFrame(arr, dtype="Int64") + result = df.mean(numeric_only=True) + expected = DataFrame(arr).mean().astype("Float64") + tm.assert_series_equal(result, expected) + + def test_stats_mixed_type(self, float_string_frame): + with pytest.raises(TypeError, match="could not convert"): + float_string_frame.std(1) + with pytest.raises(TypeError, match="could not convert"): + float_string_frame.var(1) + with pytest.raises(TypeError, match="unsupported operand type"): + float_string_frame.mean(1) + with pytest.raises(TypeError, match="could not convert"): + float_string_frame.skew(1) + + def test_sum_bools(self): + df = DataFrame(index=range(1), columns=range(10)) + bools = isna(df) + assert bools.sum(axis=1)[0] == 10 + + # ---------------------------------------------------------------------- + # Index of max / min + + @pytest.mark.parametrize("skipna", [True, False]) + @pytest.mark.parametrize("axis", [0, 1]) + def test_idxmin(self, float_frame, int_frame, skipna, axis): + frame = float_frame + frame.iloc[5:10] = np.nan + frame.iloc[15:20, -2:] = np.nan + for df in [frame, int_frame]: + warn = None + if skipna is False or axis == 1: + warn = None if df is int_frame else FutureWarning + msg = "The behavior of DataFrame.idxmin with all-NA values" + with tm.assert_produces_warning(warn, match=msg): + result = df.idxmin(axis=axis, skipna=skipna) + + msg2 = "The behavior of Series.idxmin" + with tm.assert_produces_warning(warn, match=msg2): + expected = df.apply(Series.idxmin, axis=axis, skipna=skipna) + expected = expected.astype(df.index.dtype) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("axis", [0, 1]) + @pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") + def test_idxmin_empty(self, index, skipna, axis): + # GH53265 + if axis == 0: + frame = DataFrame(index=index) + else: + frame = DataFrame(columns=index) + + result = frame.idxmin(axis=axis, skipna=skipna) + expected = Series(dtype=index.dtype) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("numeric_only", [True, False]) + def test_idxmin_numeric_only(self, numeric_only): + df = DataFrame({"a": [2, 3, 1], "b": [2, 1, 1], "c": list("xyx")}) + result = df.idxmin(numeric_only=numeric_only) + if numeric_only: + expected = Series([2, 1], index=["a", "b"]) + else: + expected = Series([2, 1, 0], index=["a", "b", "c"]) + tm.assert_series_equal(result, expected) + + def test_idxmin_axis_2(self, float_frame): + frame = float_frame + msg = "No axis named 2 for object type DataFrame" + with pytest.raises(ValueError, match=msg): + frame.idxmin(axis=2) + + @pytest.mark.parametrize("axis", [0, 1]) + def test_idxmax(self, float_frame, int_frame, skipna, axis): + frame = float_frame + frame.iloc[5:10] = np.nan + frame.iloc[15:20, -2:] = np.nan + for df in [frame, int_frame]: + warn = None + if skipna is False or axis == 1: + warn = None if df is int_frame else FutureWarning + msg = "The behavior of DataFrame.idxmax with all-NA values" + with tm.assert_produces_warning(warn, match=msg): + result = df.idxmax(axis=axis, skipna=skipna) + + msg2 = "The behavior of Series.idxmax" + with tm.assert_produces_warning(warn, match=msg2): + expected = df.apply(Series.idxmax, axis=axis, skipna=skipna) + expected = expected.astype(df.index.dtype) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("axis", [0, 1]) + @pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") + def test_idxmax_empty(self, index, skipna, axis): + # GH53265 + if axis == 0: + frame = DataFrame(index=index) + else: + frame = DataFrame(columns=index) + + result = frame.idxmax(axis=axis, skipna=skipna) + expected = Series(dtype=index.dtype) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("numeric_only", [True, False]) + def test_idxmax_numeric_only(self, numeric_only): + df = DataFrame({"a": [2, 3, 1], "b": [2, 1, 1], "c": list("xyx")}) + result = df.idxmax(numeric_only=numeric_only) + if numeric_only: + expected = Series([1, 0], index=["a", "b"]) + else: + expected = Series([1, 0, 1], index=["a", "b", "c"]) + tm.assert_series_equal(result, expected) + + def test_idxmax_arrow_types(self): + # GH#55368 + pytest.importorskip("pyarrow") + + df = DataFrame({"a": [2, 3, 1], "b": [2, 1, 1]}, dtype="int64[pyarrow]") + result = df.idxmax() + expected = Series([1, 0], index=["a", "b"]) + tm.assert_series_equal(result, expected) + + result = df.idxmin() + expected = Series([2, 1], index=["a", "b"]) + tm.assert_series_equal(result, expected) + + df = DataFrame({"a": ["b", "c", "a"]}, dtype="string[pyarrow]") + result = df.idxmax(numeric_only=False) + expected = Series([1], index=["a"]) + tm.assert_series_equal(result, expected) + + result = df.idxmin(numeric_only=False) + expected = Series([2], index=["a"]) + tm.assert_series_equal(result, expected) + + def test_idxmax_axis_2(self, float_frame): + frame = float_frame + msg = "No axis named 2 for object type DataFrame" + with pytest.raises(ValueError, match=msg): + frame.idxmax(axis=2) + + def test_idxmax_mixed_dtype(self): + # don't cast to object, which would raise in nanops + dti = date_range("2016-01-01", periods=3) + + # Copying dti is needed for ArrayManager otherwise when we set + # df.loc[0, 3] = pd.NaT below it edits dti + df = DataFrame({1: [0, 2, 1], 2: range(3)[::-1], 3: dti.copy(deep=True)}) + + result = df.idxmax() + expected = Series([1, 0, 2], index=[1, 2, 3]) + tm.assert_series_equal(result, expected) + + result = df.idxmin() + expected = Series([0, 2, 0], index=[1, 2, 3]) + tm.assert_series_equal(result, expected) + + # with NaTs + df.loc[0, 3] = pd.NaT + result = df.idxmax() + expected = Series([1, 0, 2], index=[1, 2, 3]) + tm.assert_series_equal(result, expected) + + result = df.idxmin() + expected = Series([0, 2, 1], index=[1, 2, 3]) + tm.assert_series_equal(result, expected) + + # with multi-column dt64 block + df[4] = dti[::-1] + df._consolidate_inplace() + + result = df.idxmax() + expected = Series([1, 0, 2, 0], index=[1, 2, 3, 4]) + tm.assert_series_equal(result, expected) + + result = df.idxmin() + expected = Series([0, 2, 1, 2], index=[1, 2, 3, 4]) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize( + "op, expected_value", + [("idxmax", [0, 4]), ("idxmin", [0, 5])], + ) + def test_idxmax_idxmin_convert_dtypes(self, op, expected_value): + # GH 40346 + df = DataFrame( + { + "ID": [100, 100, 100, 200, 200, 200], + "value": [0, 0, 0, 1, 2, 0], + }, + dtype="Int64", + ) + df = df.groupby("ID") + + result = getattr(df, op)() + expected = DataFrame( + {"value": expected_value}, + index=Index([100, 200], name="ID", dtype="Int64"), + ) + tm.assert_frame_equal(result, expected) + + def test_idxmax_dt64_multicolumn_axis1(self): + dti = date_range("2016-01-01", periods=3) + df = DataFrame({3: dti, 4: dti[::-1]}, copy=True) + df.iloc[0, 0] = pd.NaT + + df._consolidate_inplace() + + result = df.idxmax(axis=1) + expected = Series([4, 3, 3]) + tm.assert_series_equal(result, expected) + + result = df.idxmin(axis=1) + expected = Series([4, 3, 4]) + tm.assert_series_equal(result, expected) + + # ---------------------------------------------------------------------- + # Logical reductions + + @pytest.mark.parametrize("opname", ["any", "all"]) + @pytest.mark.parametrize("axis", [0, 1]) + @pytest.mark.parametrize("bool_only", [False, True]) + def test_any_all_mixed_float(self, opname, axis, bool_only, float_string_frame): + # make sure op works on mixed-type frame + mixed = float_string_frame + mixed["_bool_"] = np.random.default_rng(2).standard_normal(len(mixed)) > 0.5 + + getattr(mixed, opname)(axis=axis, bool_only=bool_only) + + @pytest.mark.parametrize("opname", ["any", "all"]) + @pytest.mark.parametrize("axis", [0, 1]) + def test_any_all_bool_with_na(self, opname, axis, bool_frame_with_na): + getattr(bool_frame_with_na, opname)(axis=axis, bool_only=False) + + @pytest.mark.filterwarnings("ignore:Downcasting object dtype arrays:FutureWarning") + @pytest.mark.parametrize("opname", ["any", "all"]) + def test_any_all_bool_frame(self, opname, bool_frame_with_na): + # GH#12863: numpy gives back non-boolean data for object type + # so fill NaNs to compare with pandas behavior + frame = bool_frame_with_na.fillna(True) + alternative = getattr(np, opname) + f = getattr(frame, opname) + + def skipna_wrapper(x): + nona = x.dropna().values + return alternative(nona) + + def wrapper(x): + return alternative(x.values) + + result0 = f(axis=0, skipna=False) + result1 = f(axis=1, skipna=False) + + tm.assert_series_equal(result0, frame.apply(wrapper)) + tm.assert_series_equal(result1, frame.apply(wrapper, axis=1)) + + result0 = f(axis=0) + result1 = f(axis=1) + + tm.assert_series_equal(result0, frame.apply(skipna_wrapper)) + tm.assert_series_equal( + result1, frame.apply(skipna_wrapper, axis=1), check_dtype=False + ) + + # bad axis + with pytest.raises(ValueError, match="No axis named 2"): + f(axis=2) + + # all NA case + all_na = frame * np.nan + r0 = getattr(all_na, opname)(axis=0) + r1 = getattr(all_na, opname)(axis=1) + if opname == "any": + assert not r0.any() + assert not r1.any() + else: + assert r0.all() + assert r1.all() + + def test_any_all_extra(self): + df = DataFrame( + { + "A": [True, False, False], + "B": [True, True, False], + "C": [True, True, True], + }, + index=["a", "b", "c"], + ) + result = df[["A", "B"]].any(axis=1) + expected = Series([True, True, False], index=["a", "b", "c"]) + tm.assert_series_equal(result, expected) + + result = df[["A", "B"]].any(axis=1, bool_only=True) + tm.assert_series_equal(result, expected) + + result = df.all(1) + expected = Series([True, False, False], index=["a", "b", "c"]) + tm.assert_series_equal(result, expected) + + result = df.all(1, bool_only=True) + tm.assert_series_equal(result, expected) + + # Axis is None + result = df.all(axis=None).item() + assert result is False + + result = df.any(axis=None).item() + assert result is True + + result = df[["C"]].all(axis=None).item() + assert result is True + + @pytest.mark.parametrize("axis", [0, 1]) + @pytest.mark.parametrize("bool_agg_func", ["any", "all"]) + @pytest.mark.parametrize("skipna", [True, False]) + def test_any_all_object_dtype(self, axis, bool_agg_func, skipna): + # GH#35450 + df = DataFrame( + data=[ + [1, np.nan, np.nan, True], + [np.nan, 2, np.nan, True], + [np.nan, np.nan, np.nan, True], + [np.nan, np.nan, "5", np.nan], + ] + ) + result = getattr(df, bool_agg_func)(axis=axis, skipna=skipna) + expected = Series([True, True, True, True]) + tm.assert_series_equal(result, expected) + + # GH#50947 deprecates this but it is not emitting a warning in some builds. + @pytest.mark.filterwarnings( + "ignore:'any' with datetime64 dtypes is deprecated.*:FutureWarning" + ) + def test_any_datetime(self): + # GH 23070 + float_data = [1, np.nan, 3, np.nan] + datetime_data = [ + Timestamp("1960-02-15"), + Timestamp("1960-02-16"), + pd.NaT, + pd.NaT, + ] + df = DataFrame({"A": float_data, "B": datetime_data}) + + result = df.any(axis=1) + + expected = Series([True, True, True, False]) + tm.assert_series_equal(result, expected) + + def test_any_all_bool_only(self): + # GH 25101 + df = DataFrame( + {"col1": [1, 2, 3], "col2": [4, 5, 6], "col3": [None, None, None]}, + columns=Index(["col1", "col2", "col3"], dtype=object), + ) + + result = df.all(bool_only=True) + expected = Series(dtype=np.bool_, index=[]) + tm.assert_series_equal(result, expected) + + df = DataFrame( + { + "col1": [1, 2, 3], + "col2": [4, 5, 6], + "col3": [None, None, None], + "col4": [False, False, True], + } + ) + + result = df.all(bool_only=True) + expected = Series({"col4": False}) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize( + "func, data, expected", + [ + (np.any, {}, False), + (np.all, {}, True), + (np.any, {"A": []}, False), + (np.all, {"A": []}, True), + (np.any, {"A": [False, False]}, False), + (np.all, {"A": [False, False]}, False), + (np.any, {"A": [True, False]}, True), + (np.all, {"A": [True, False]}, False), + (np.any, {"A": [True, True]}, True), + (np.all, {"A": [True, True]}, True), + (np.any, {"A": [False], "B": [False]}, False), + (np.all, {"A": [False], "B": [False]}, False), + (np.any, {"A": [False, False], "B": [False, True]}, True), + (np.all, {"A": [False, False], "B": [False, True]}, False), + # other types + (np.all, {"A": Series([0.0, 1.0], dtype="float")}, False), + (np.any, {"A": Series([0.0, 1.0], dtype="float")}, True), + (np.all, {"A": Series([0, 1], dtype=int)}, False), + (np.any, {"A": Series([0, 1], dtype=int)}, True), + pytest.param(np.all, {"A": Series([0, 1], dtype="M8[ns]")}, False), + pytest.param(np.all, {"A": Series([0, 1], dtype="M8[ns, UTC]")}, False), + pytest.param(np.any, {"A": Series([0, 1], dtype="M8[ns]")}, True), + pytest.param(np.any, {"A": Series([0, 1], dtype="M8[ns, UTC]")}, True), + pytest.param(np.all, {"A": Series([1, 2], dtype="M8[ns]")}, True), + pytest.param(np.all, {"A": Series([1, 2], dtype="M8[ns, UTC]")}, True), + pytest.param(np.any, {"A": Series([1, 2], dtype="M8[ns]")}, True), + pytest.param(np.any, {"A": Series([1, 2], dtype="M8[ns, UTC]")}, True), + pytest.param(np.all, {"A": Series([0, 1], dtype="m8[ns]")}, False), + pytest.param(np.any, {"A": Series([0, 1], dtype="m8[ns]")}, True), + pytest.param(np.all, {"A": Series([1, 2], dtype="m8[ns]")}, True), + pytest.param(np.any, {"A": Series([1, 2], dtype="m8[ns]")}, True), + # np.all on Categorical raises, so the reduction drops the + # column, so all is being done on an empty Series, so is True + (np.all, {"A": Series([0, 1], dtype="category")}, True), + (np.any, {"A": Series([0, 1], dtype="category")}, False), + (np.all, {"A": Series([1, 2], dtype="category")}, True), + (np.any, {"A": Series([1, 2], dtype="category")}, False), + # Mix GH#21484 + pytest.param( + np.all, + { + "A": Series([10, 20], dtype="M8[ns]"), + "B": Series([10, 20], dtype="m8[ns]"), + }, + True, + ), + ], + ) + def test_any_all_np_func(self, func, data, expected): + # GH 19976 + data = DataFrame(data) + + if any(isinstance(x, CategoricalDtype) for x in data.dtypes): + with pytest.raises( + TypeError, match="dtype category does not support reduction" + ): + func(data) + + # method version + with pytest.raises( + TypeError, match="dtype category does not support reduction" + ): + getattr(DataFrame(data), func.__name__)(axis=None) + else: + msg = "'(any|all)' with datetime64 dtypes is deprecated" + if data.dtypes.apply(lambda x: x.kind == "M").any(): + warn = FutureWarning + else: + warn = None + + with tm.assert_produces_warning(warn, match=msg, check_stacklevel=False): + # GH#34479 + result = func(data) + assert isinstance(result, np.bool_) + assert result.item() is expected + + # method version + with tm.assert_produces_warning(warn, match=msg): + # GH#34479 + result = getattr(DataFrame(data), func.__name__)(axis=None) + assert isinstance(result, np.bool_) + assert result.item() is expected + + def test_any_all_object(self): + # GH 19976 + result = np.all(DataFrame(columns=["a", "b"])).item() + assert result is True + + result = np.any(DataFrame(columns=["a", "b"])).item() + assert result is False + + def test_any_all_object_bool_only(self): + df = DataFrame({"A": ["foo", 2], "B": [True, False]}).astype(object) + df._consolidate_inplace() + df["C"] = Series([True, True]) + + # Categorical of bools is _not_ considered booly + df["D"] = df["C"].astype("category") + + # The underlying bug is in DataFrame._get_bool_data, so we check + # that while we're here + res = df._get_bool_data() + expected = df[["C"]] + tm.assert_frame_equal(res, expected) + + res = df.all(bool_only=True, axis=0) + expected = Series([True], index=["C"]) + tm.assert_series_equal(res, expected) + + # operating on a subset of columns should not produce a _larger_ Series + res = df[["B", "C"]].all(bool_only=True, axis=0) + tm.assert_series_equal(res, expected) + + assert df.all(bool_only=True, axis=None) + + res = df.any(bool_only=True, axis=0) + expected = Series([True], index=["C"]) + tm.assert_series_equal(res, expected) + + # operating on a subset of columns should not produce a _larger_ Series + res = df[["C"]].any(bool_only=True, axis=0) + tm.assert_series_equal(res, expected) + + assert df.any(bool_only=True, axis=None) + + # --------------------------------------------------------------------- + # Unsorted + + def test_series_broadcasting(self): + # smoke test for numpy warnings + # GH 16378, GH 16306 + df = DataFrame([1.0, 1.0, 1.0]) + df_nan = DataFrame({"A": [np.nan, 2.0, np.nan]}) + s = Series([1, 1, 1]) + s_nan = Series([np.nan, np.nan, 1]) + + with tm.assert_produces_warning(None): + df_nan.clip(lower=s, axis=0) + for op in ["lt", "le", "gt", "ge", "eq", "ne"]: + getattr(df, op)(s_nan, axis=0) + + +class TestDataFrameReductions: + def test_min_max_dt64_with_NaT(self): + # Both NaT and Timestamp are in DataFrame. + df = DataFrame({"foo": [pd.NaT, pd.NaT, Timestamp("2012-05-01")]}) + + res = df.min() + exp = Series([Timestamp("2012-05-01")], index=["foo"]) + tm.assert_series_equal(res, exp) + + res = df.max() + exp = Series([Timestamp("2012-05-01")], index=["foo"]) + tm.assert_series_equal(res, exp) + + # GH12941, only NaTs are in DataFrame. + df = DataFrame({"foo": [pd.NaT, pd.NaT]}) + + res = df.min() + exp = Series([pd.NaT], index=["foo"]) + tm.assert_series_equal(res, exp) + + res = df.max() + exp = Series([pd.NaT], index=["foo"]) + tm.assert_series_equal(res, exp) + + def test_min_max_dt64_with_NaT_skipna_false(self, request, tz_naive_fixture): + # GH#36907 + tz = tz_naive_fixture + if isinstance(tz, tzlocal) and is_platform_windows(): + pytest.skip( + "GH#37659 OSError raised within tzlocal bc Windows " + "chokes in times before 1970-01-01" + ) + + df = DataFrame( + { + "a": [ + Timestamp("2020-01-01 08:00:00", tz=tz), + Timestamp("1920-02-01 09:00:00", tz=tz), + ], + "b": [Timestamp("2020-02-01 08:00:00", tz=tz), pd.NaT], + } + ) + res = df.min(axis=1, skipna=False) + expected = Series([df.loc[0, "a"], pd.NaT]) + assert expected.dtype == df["a"].dtype + + tm.assert_series_equal(res, expected) + + res = df.max(axis=1, skipna=False) + expected = Series([df.loc[0, "b"], pd.NaT]) + assert expected.dtype == df["a"].dtype + + tm.assert_series_equal(res, expected) + + def test_min_max_dt64_api_consistency_with_NaT(self): + # Calling the following sum functions returned an error for dataframes but + # returned NaT for series. These tests check that the API is consistent in + # min/max calls on empty Series/DataFrames. See GH:33704 for more + # information + df = DataFrame({"x": to_datetime([])}) + expected_dt_series = Series(to_datetime([])) + # check axis 0 + assert (df.min(axis=0).x is pd.NaT) == (expected_dt_series.min() is pd.NaT) + assert (df.max(axis=0).x is pd.NaT) == (expected_dt_series.max() is pd.NaT) + + # check axis 1 + tm.assert_series_equal(df.min(axis=1), expected_dt_series) + tm.assert_series_equal(df.max(axis=1), expected_dt_series) + + def test_min_max_dt64_api_consistency_empty_df(self): + # check DataFrame/Series api consistency when calling min/max on an empty + # DataFrame/Series. + df = DataFrame({"x": []}) + expected_float_series = Series([], dtype=float) + # check axis 0 + assert np.isnan(df.min(axis=0).x) == np.isnan(expected_float_series.min()) + assert np.isnan(df.max(axis=0).x) == np.isnan(expected_float_series.max()) + # check axis 1 + tm.assert_series_equal(df.min(axis=1), expected_float_series) + tm.assert_series_equal(df.min(axis=1), expected_float_series) + + @pytest.mark.parametrize( + "initial", + ["2018-10-08 13:36:45+00:00", "2018-10-08 13:36:45+03:00"], # Non-UTC timezone + ) + @pytest.mark.parametrize("method", ["min", "max"]) + def test_preserve_timezone(self, initial: str, method): + # GH 28552 + initial_dt = to_datetime(initial) + expected = Series([initial_dt]) + df = DataFrame([expected]) + result = getattr(df, method)(axis=1) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("method", ["min", "max"]) + def test_minmax_tzaware_skipna_axis_1(self, method, skipna): + # GH#51242 + val = to_datetime("1900-01-01", utc=True) + df = DataFrame( + {"a": Series([pd.NaT, pd.NaT, val]), "b": Series([pd.NaT, val, val])} + ) + op = getattr(df, method) + result = op(axis=1, skipna=skipna) + if skipna: + expected = Series([pd.NaT, val, val]) + else: + expected = Series([pd.NaT, pd.NaT, val]) + tm.assert_series_equal(result, expected) + + def test_frame_any_with_timedelta(self): + # GH#17667 + df = DataFrame( + { + "a": Series([0, 0]), + "t": Series([to_timedelta(0, "s"), to_timedelta(1, "ms")]), + } + ) + + result = df.any(axis=0) + expected = Series(data=[False, True], index=["a", "t"]) + tm.assert_series_equal(result, expected) + + result = df.any(axis=1) + expected = Series(data=[False, True]) + tm.assert_series_equal(result, expected) + + def test_reductions_skipna_none_raises( + self, request, frame_or_series, all_reductions + ): + if all_reductions == "count": + request.applymarker( + pytest.mark.xfail(reason="Count does not accept skipna") + ) + obj = frame_or_series([1, 2, 3]) + msg = 'For argument "skipna" expected type bool, received type NoneType.' + with pytest.raises(ValueError, match=msg): + getattr(obj, all_reductions)(skipna=None) + + @td.skip_array_manager_invalid_test + def test_reduction_timestamp_smallest_unit(self): + # GH#52524 + df = DataFrame( + { + "a": Series([Timestamp("2019-12-31")], dtype="datetime64[s]"), + "b": Series( + [Timestamp("2019-12-31 00:00:00.123")], dtype="datetime64[ms]" + ), + } + ) + result = df.max() + expected = Series( + [Timestamp("2019-12-31"), Timestamp("2019-12-31 00:00:00.123")], + dtype="datetime64[ms]", + index=["a", "b"], + ) + tm.assert_series_equal(result, expected) + + @td.skip_array_manager_not_yet_implemented + def test_reduction_timedelta_smallest_unit(self): + # GH#52524 + df = DataFrame( + { + "a": Series([pd.Timedelta("1 days")], dtype="timedelta64[s]"), + "b": Series([pd.Timedelta("1 days")], dtype="timedelta64[ms]"), + } + ) + result = df.max() + expected = Series( + [pd.Timedelta("1 days"), pd.Timedelta("1 days")], + dtype="timedelta64[ms]", + index=["a", "b"], + ) + tm.assert_series_equal(result, expected) + + +class TestNuisanceColumns: + @pytest.mark.parametrize("method", ["any", "all"]) + def test_any_all_categorical_dtype_nuisance_column(self, method): + # GH#36076 DataFrame should match Series behavior + ser = Series([0, 1], dtype="category", name="A") + df = ser.to_frame() + + # Double-check the Series behavior is to raise + with pytest.raises(TypeError, match="does not support reduction"): + getattr(ser, method)() + + with pytest.raises(TypeError, match="does not support reduction"): + getattr(np, method)(ser) + + with pytest.raises(TypeError, match="does not support reduction"): + getattr(df, method)(bool_only=False) + + with pytest.raises(TypeError, match="does not support reduction"): + getattr(df, method)(bool_only=None) + + with pytest.raises(TypeError, match="does not support reduction"): + getattr(np, method)(df, axis=0) + + def test_median_categorical_dtype_nuisance_column(self): + # GH#21020 DataFrame.median should match Series.median + df = DataFrame({"A": Categorical([1, 2, 2, 2, 3])}) + ser = df["A"] + + # Double-check the Series behavior is to raise + with pytest.raises(TypeError, match="does not support reduction"): + ser.median() + + with pytest.raises(TypeError, match="does not support reduction"): + df.median(numeric_only=False) + + with pytest.raises(TypeError, match="does not support reduction"): + df.median() + + # same thing, but with an additional non-categorical column + df["B"] = df["A"].astype(int) + + with pytest.raises(TypeError, match="does not support reduction"): + df.median(numeric_only=False) + + with pytest.raises(TypeError, match="does not support reduction"): + df.median() + + # TODO: np.median(df, axis=0) gives np.array([2.0, 2.0]) instead + # of expected.values + + @pytest.mark.parametrize("method", ["min", "max"]) + def test_min_max_categorical_dtype_non_ordered_nuisance_column(self, method): + # GH#28949 DataFrame.min should behave like Series.min + cat = Categorical(["a", "b", "c", "b"], ordered=False) + ser = Series(cat) + df = ser.to_frame("A") + + # Double-check the Series behavior + with pytest.raises(TypeError, match="is not ordered for operation"): + getattr(ser, method)() + + with pytest.raises(TypeError, match="is not ordered for operation"): + getattr(np, method)(ser) + + with pytest.raises(TypeError, match="is not ordered for operation"): + getattr(df, method)(numeric_only=False) + + with pytest.raises(TypeError, match="is not ordered for operation"): + getattr(df, method)() + + with pytest.raises(TypeError, match="is not ordered for operation"): + getattr(np, method)(df, axis=0) + + # same thing, but with an additional non-categorical column + df["B"] = df["A"].astype(object) + with pytest.raises(TypeError, match="is not ordered for operation"): + getattr(df, method)() + + with pytest.raises(TypeError, match="is not ordered for operation"): + getattr(np, method)(df, axis=0) + + +class TestEmptyDataFrameReductions: + @pytest.mark.parametrize( + "opname, dtype, exp_value, exp_dtype", + [ + ("sum", np.int8, 0, np.int64), + ("prod", np.int8, 1, np.int_), + ("sum", np.int64, 0, np.int64), + ("prod", np.int64, 1, np.int64), + ("sum", np.uint8, 0, np.uint64), + ("prod", np.uint8, 1, np.uint), + ("sum", np.uint64, 0, np.uint64), + ("prod", np.uint64, 1, np.uint64), + ("sum", np.float32, 0, np.float32), + ("prod", np.float32, 1, np.float32), + ("sum", np.float64, 0, np.float64), + ], + ) + def test_df_empty_min_count_0(self, opname, dtype, exp_value, exp_dtype): + df = DataFrame({0: [], 1: []}, dtype=dtype) + result = getattr(df, opname)(min_count=0) + + expected = Series([exp_value, exp_value], dtype=exp_dtype) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize( + "opname, dtype, exp_dtype", + [ + ("sum", np.int8, np.float64), + ("prod", np.int8, np.float64), + ("sum", np.int64, np.float64), + ("prod", np.int64, np.float64), + ("sum", np.uint8, np.float64), + ("prod", np.uint8, np.float64), + ("sum", np.uint64, np.float64), + ("prod", np.uint64, np.float64), + ("sum", np.float32, np.float32), + ("prod", np.float32, np.float32), + ("sum", np.float64, np.float64), + ], + ) + def test_df_empty_min_count_1(self, opname, dtype, exp_dtype): + df = DataFrame({0: [], 1: []}, dtype=dtype) + result = getattr(df, opname)(min_count=1) + + expected = Series([np.nan, np.nan], dtype=exp_dtype) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize( + "opname, dtype, exp_value, exp_dtype", + [ + ("sum", "Int8", 0, ("Int32" if is_windows_np2_or_is32 else "Int64")), + ("prod", "Int8", 1, ("Int32" if is_windows_np2_or_is32 else "Int64")), + ("prod", "Int8", 1, ("Int32" if is_windows_np2_or_is32 else "Int64")), + ("sum", "Int64", 0, "Int64"), + ("prod", "Int64", 1, "Int64"), + ("sum", "UInt8", 0, ("UInt32" if is_windows_np2_or_is32 else "UInt64")), + ("prod", "UInt8", 1, ("UInt32" if is_windows_np2_or_is32 else "UInt64")), + ("sum", "UInt64", 0, "UInt64"), + ("prod", "UInt64", 1, "UInt64"), + ("sum", "Float32", 0, "Float32"), + ("prod", "Float32", 1, "Float32"), + ("sum", "Float64", 0, "Float64"), + ], + ) + def test_df_empty_nullable_min_count_0(self, opname, dtype, exp_value, exp_dtype): + df = DataFrame({0: [], 1: []}, dtype=dtype) + result = getattr(df, opname)(min_count=0) + + expected = Series([exp_value, exp_value], dtype=exp_dtype) + tm.assert_series_equal(result, expected) + + # TODO: why does min_count=1 impact the resulting Windows dtype + # differently than min_count=0? + @pytest.mark.parametrize( + "opname, dtype, exp_dtype", + [ + ("sum", "Int8", ("Int32" if is_windows_or_is32 else "Int64")), + ("prod", "Int8", ("Int32" if is_windows_or_is32 else "Int64")), + ("sum", "Int64", "Int64"), + ("prod", "Int64", "Int64"), + ("sum", "UInt8", ("UInt32" if is_windows_or_is32 else "UInt64")), + ("prod", "UInt8", ("UInt32" if is_windows_or_is32 else "UInt64")), + ("sum", "UInt64", "UInt64"), + ("prod", "UInt64", "UInt64"), + ("sum", "Float32", "Float32"), + ("prod", "Float32", "Float32"), + ("sum", "Float64", "Float64"), + ], + ) + def test_df_empty_nullable_min_count_1(self, opname, dtype, exp_dtype): + df = DataFrame({0: [], 1: []}, dtype=dtype) + result = getattr(df, opname)(min_count=1) + + expected = Series([pd.NA, pd.NA], dtype=exp_dtype) + tm.assert_series_equal(result, expected) + + +def test_sum_timedelta64_skipna_false(using_array_manager, request): + # GH#17235 + if using_array_manager: + mark = pytest.mark.xfail( + reason="Incorrect type inference on NaT in reduction result" + ) + request.applymarker(mark) + + arr = np.arange(8).astype(np.int64).view("m8[s]").reshape(4, 2) + arr[-1, -1] = "Nat" + + df = DataFrame(arr) + assert (df.dtypes == arr.dtype).all() + + result = df.sum(skipna=False) + expected = Series([pd.Timedelta(seconds=12), pd.NaT], dtype="m8[s]") + tm.assert_series_equal(result, expected) + + result = df.sum(axis=0, skipna=False) + tm.assert_series_equal(result, expected) + + result = df.sum(axis=1, skipna=False) + expected = Series( + [ + pd.Timedelta(seconds=1), + pd.Timedelta(seconds=5), + pd.Timedelta(seconds=9), + pd.NaT, + ], + dtype="m8[s]", + ) + tm.assert_series_equal(result, expected) + + +def test_mixed_frame_with_integer_sum(): + # https://github.com/pandas-dev/pandas/issues/34520 + df = DataFrame([["a", 1]], columns=list("ab")) + df = df.astype({"b": "Int64"}) + result = df.sum() + expected = Series(["a", 1], index=["a", "b"]) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("numeric_only", [True, False, None]) +@pytest.mark.parametrize("method", ["min", "max"]) +def test_minmax_extensionarray(method, numeric_only): + # https://github.com/pandas-dev/pandas/issues/32651 + int64_info = np.iinfo("int64") + ser = Series([int64_info.max, None, int64_info.min], dtype=pd.Int64Dtype()) + df = DataFrame({"Int64": ser}) + result = getattr(df, method)(numeric_only=numeric_only) + expected = Series( + [getattr(int64_info, method)], + dtype="Int64", + index=Index(["Int64"]), + ) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("ts_value", [Timestamp("2000-01-01"), pd.NaT]) +def test_frame_mixed_numeric_object_with_timestamp(ts_value): + # GH 13912 + df = DataFrame({"a": [1], "b": [1.1], "c": ["foo"], "d": [ts_value]}) + with pytest.raises( + TypeError, match="does not support (operation|reduction)|Cannot perform" + ): + df.sum() + + +def test_prod_sum_min_count_mixed_object(): + # https://github.com/pandas-dev/pandas/issues/41074 + df = DataFrame([1, "a", True]) + + result = df.prod(axis=0, min_count=1, numeric_only=False) + expected = Series(["a"], dtype=object) + tm.assert_series_equal(result, expected) + + msg = re.escape("unsupported operand type(s) for +: 'int' and 'str'") + with pytest.raises(TypeError, match=msg): + df.sum(axis=0, min_count=1, numeric_only=False) + + +@pytest.mark.parametrize("method", ["min", "max", "mean", "median", "skew", "kurt"]) +@pytest.mark.parametrize("numeric_only", [True, False]) +@pytest.mark.parametrize("dtype", ["float64", "Float64"]) +def test_reduction_axis_none_returns_scalar(method, numeric_only, dtype): + # GH#21597 As of 2.0, axis=None reduces over all axes. + + df = DataFrame(np.random.default_rng(2).standard_normal((4, 4)), dtype=dtype) + + result = getattr(df, method)(axis=None, numeric_only=numeric_only) + np_arr = df.to_numpy(dtype=np.float64) + if method in {"skew", "kurt"}: + comp_mod = pytest.importorskip("scipy.stats") + if method == "kurt": + method = "kurtosis" + expected = getattr(comp_mod, method)(np_arr, bias=False, axis=None) + tm.assert_almost_equal(result, expected) + else: + expected = getattr(np, method)(np_arr, axis=None) + assert result == expected + + +@pytest.mark.parametrize( + "kernel", + [ + "corr", + "corrwith", + "cov", + "idxmax", + "idxmin", + "kurt", + "max", + "mean", + "median", + "min", + "prod", + "quantile", + "sem", + "skew", + "std", + "sum", + "var", + ], +) +def test_fails_on_non_numeric(kernel): + # GH#46852 + df = DataFrame({"a": [1, 2, 3], "b": object}) + args = (df,) if kernel == "corrwith" else () + msg = "|".join( + [ + "not allowed for this dtype", + "argument must be a string or a number", + "not supported between instances of", + "unsupported operand type", + "argument must be a string or a real number", + ] + ) + if kernel == "median": + # slightly different message on different builds + msg1 = ( + r"Cannot convert \[\[ " + r"\]\] to numeric" + ) + msg2 = ( + r"Cannot convert \[ " + r"\] to numeric" + ) + msg = "|".join([msg1, msg2]) + with pytest.raises(TypeError, match=msg): + getattr(df, kernel)(*args) + + +@pytest.mark.parametrize( + "method", + [ + "all", + "any", + "count", + "idxmax", + "idxmin", + "kurt", + "kurtosis", + "max", + "mean", + "median", + "min", + "nunique", + "prod", + "product", + "sem", + "skew", + "std", + "sum", + "var", + ], +) +@pytest.mark.parametrize("min_count", [0, 2]) +def test_numeric_ea_axis_1(method, skipna, min_count, any_numeric_ea_dtype): + # GH 54341 + df = DataFrame( + { + "a": Series([0, 1, 2, 3], dtype=any_numeric_ea_dtype), + "b": Series([0, 1, pd.NA, 3], dtype=any_numeric_ea_dtype), + }, + ) + expected_df = DataFrame( + { + "a": [0.0, 1.0, 2.0, 3.0], + "b": [0.0, 1.0, np.nan, 3.0], + }, + ) + if method in ("count", "nunique"): + expected_dtype = "int64" + elif method in ("all", "any"): + expected_dtype = "boolean" + elif method in ( + "kurt", + "kurtosis", + "mean", + "median", + "sem", + "skew", + "std", + "var", + ) and not any_numeric_ea_dtype.startswith("Float"): + expected_dtype = "Float64" + else: + expected_dtype = any_numeric_ea_dtype + + kwargs = {} + if method not in ("count", "nunique", "quantile"): + kwargs["skipna"] = skipna + if method in ("prod", "product", "sum"): + kwargs["min_count"] = min_count + + warn = None + msg = None + if not skipna and method in ("idxmax", "idxmin"): + warn = FutureWarning + msg = f"The behavior of DataFrame.{method} with all-NA values" + with tm.assert_produces_warning(warn, match=msg): + result = getattr(df, method)(axis=1, **kwargs) + with tm.assert_produces_warning(warn, match=msg): + expected = getattr(expected_df, method)(axis=1, **kwargs) + if method not in ("idxmax", "idxmin"): + expected = expected.astype(expected_dtype) + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_repr.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_repr.py new file mode 100644 index 0000000000000000000000000000000000000000..6184e791cab5d00f8a1057d142e4c63c3690615a --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_repr.py @@ -0,0 +1,518 @@ +from datetime import ( + datetime, + timedelta, +) +from io import StringIO + +import numpy as np +import pytest + +from pandas import ( + NA, + Categorical, + CategoricalIndex, + DataFrame, + IntervalIndex, + MultiIndex, + NaT, + PeriodIndex, + Series, + Timestamp, + date_range, + option_context, + period_range, +) +import pandas._testing as tm + + +class TestDataFrameRepr: + def test_repr_should_return_str(self): + # https://docs.python.org/3/reference/datamodel.html#object.__repr__ + # "...The return value must be a string object." + + # (str on py2.x, str (unicode) on py3) + + data = [8, 5, 3, 5] + index1 = ["\u03c3", "\u03c4", "\u03c5", "\u03c6"] + cols = ["\u03c8"] + df = DataFrame(data, columns=cols, index=index1) + assert type(df.__repr__()) is str # noqa: E721 + + ser = df[cols[0]] + assert type(ser.__repr__()) is str # noqa: E721 + + def test_repr_bytes_61_lines(self): + # GH#12857 + lets = list("ACDEFGHIJKLMNOP") + words = np.random.default_rng(2).choice(lets, (1000, 50)) + df = DataFrame(words).astype("U1") + assert (df.dtypes == object).all() + + # smoke tests; at one point this raised with 61 but not 60 + repr(df) + repr(df.iloc[:60, :]) + repr(df.iloc[:61, :]) + + def test_repr_unicode_level_names(self, frame_or_series): + index = MultiIndex.from_tuples([(0, 0), (1, 1)], names=["\u0394", "i1"]) + + obj = DataFrame(np.random.default_rng(2).standard_normal((2, 4)), index=index) + obj = tm.get_obj(obj, frame_or_series) + repr(obj) + + def test_assign_index_sequences(self): + # GH#2200 + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [7, 8, 9]}).set_index( + ["a", "b"] + ) + index = list(df.index) + index[0] = ("faz", "boo") + df.index = index + repr(df) + + # this travels an improper code path + index[0] = ["faz", "boo"] + df.index = index + repr(df) + + def test_repr_with_mi_nat(self): + df = DataFrame({"X": [1, 2]}, index=[[NaT, Timestamp("20130101")], ["a", "b"]]) + result = repr(df) + expected = " X\nNaT a 1\n2013-01-01 b 2" + assert result == expected + + def test_repr_with_different_nulls(self): + # GH45263 + df = DataFrame([1, 2, 3, 4], [True, None, np.nan, NaT]) + result = repr(df) + expected = """ 0 +True 1 +None 2 +NaN 3 +NaT 4""" + assert result == expected + + def test_repr_with_different_nulls_cols(self): + # GH45263 + d = {np.nan: [1, 2], None: [3, 4], NaT: [6, 7], True: [8, 9]} + df = DataFrame(data=d) + result = repr(df) + expected = """ NaN None NaT True +0 1 3 6 8 +1 2 4 7 9""" + assert result == expected + + def test_multiindex_na_repr(self): + # only an issue with long columns + df3 = DataFrame( + { + "A" * 30: {("A", "A0006000", "nuit"): "A0006000"}, + "B" * 30: {("A", "A0006000", "nuit"): np.nan}, + "C" * 30: {("A", "A0006000", "nuit"): np.nan}, + "D" * 30: {("A", "A0006000", "nuit"): np.nan}, + "E" * 30: {("A", "A0006000", "nuit"): "A"}, + "F" * 30: {("A", "A0006000", "nuit"): np.nan}, + } + ) + + idf = df3.set_index(["A" * 30, "C" * 30]) + repr(idf) + + def test_repr_name_coincide(self): + index = MultiIndex.from_tuples( + [("a", 0, "foo"), ("b", 1, "bar")], names=["a", "b", "c"] + ) + + df = DataFrame({"value": [0, 1]}, index=index) + + lines = repr(df).split("\n") + assert lines[2].startswith("a 0 foo") + + def test_repr_to_string( + self, + multiindex_year_month_day_dataframe_random_data, + multiindex_dataframe_random_data, + ): + ymd = multiindex_year_month_day_dataframe_random_data + frame = multiindex_dataframe_random_data + + repr(frame) + repr(ymd) + repr(frame.T) + repr(ymd.T) + + buf = StringIO() + frame.to_string(buf=buf) + ymd.to_string(buf=buf) + frame.T.to_string(buf=buf) + ymd.T.to_string(buf=buf) + + def test_repr_empty(self): + # empty + repr(DataFrame()) + + # empty with index + frame = DataFrame(index=np.arange(1000)) + repr(frame) + + def test_repr_mixed(self, float_string_frame): + # mixed + repr(float_string_frame) + + @pytest.mark.slow + def test_repr_mixed_big(self): + # big mixed + biggie = DataFrame( + { + "A": np.random.default_rng(2).standard_normal(200), + "B": [str(i) for i in range(200)], + }, + index=range(200), + ) + biggie.loc[:20, "A"] = np.nan + biggie.loc[:20, "B"] = np.nan + + repr(biggie) + + def test_repr(self): + # columns but no index + no_index = DataFrame(columns=[0, 1, 3]) + repr(no_index) + + df = DataFrame(["a\n\r\tb"], columns=["a\n\r\td"], index=["a\n\r\tf"]) + assert "\t" not in repr(df) + assert "\r" not in repr(df) + assert "a\n" not in repr(df) + + def test_repr_dimensions(self): + df = DataFrame([[1, 2], [3, 4]]) + with option_context("display.show_dimensions", True): + assert "2 rows x 2 columns" in repr(df) + + with option_context("display.show_dimensions", False): + assert "2 rows x 2 columns" not in repr(df) + + with option_context("display.show_dimensions", "truncate"): + assert "2 rows x 2 columns" not in repr(df) + + @pytest.mark.slow + def test_repr_big(self): + # big one + biggie = DataFrame(np.zeros((200, 4)), columns=range(4), index=range(200)) + repr(biggie) + + def test_repr_unsortable(self): + # columns are not sortable + + unsortable = DataFrame( + { + "foo": [1] * 50, + datetime.today(): [1] * 50, + "bar": ["bar"] * 50, + datetime.today() + timedelta(1): ["bar"] * 50, + }, + index=np.arange(50), + ) + repr(unsortable) + + def test_repr_float_frame_options(self, float_frame): + repr(float_frame) + + with option_context("display.precision", 3): + repr(float_frame) + + with option_context("display.max_rows", 10, "display.max_columns", 2): + repr(float_frame) + + with option_context("display.max_rows", 1000, "display.max_columns", 1000): + repr(float_frame) + + def test_repr_unicode(self): + uval = "\u03c3\u03c3\u03c3\u03c3" + + df = DataFrame({"A": [uval, uval]}) + + result = repr(df) + ex_top = " A" + assert result.split("\n")[0].rstrip() == ex_top + + df = DataFrame({"A": [uval, uval]}) + result = repr(df) + assert result.split("\n")[0].rstrip() == ex_top + + def test_unicode_string_with_unicode(self): + df = DataFrame({"A": ["\u05d0"]}) + str(df) + + def test_repr_unicode_columns(self): + df = DataFrame({"\u05d0": [1, 2, 3], "\u05d1": [4, 5, 6], "c": [7, 8, 9]}) + repr(df.columns) # should not raise UnicodeDecodeError + + def test_str_to_bytes_raises(self): + # GH 26447 + df = DataFrame({"A": ["abc"]}) + msg = "^'str' object cannot be interpreted as an integer$" + with pytest.raises(TypeError, match=msg): + bytes(df) + + def test_very_wide_repr(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 20)), + columns=np.array(["a" * 10] * 20, dtype=object), + ) + repr(df) + + def test_repr_column_name_unicode_truncation_bug(self): + # #1906 + df = DataFrame( + { + "Id": [7117434], + "StringCol": ( + "Is it possible to modify drop plot code" + "so that the output graph is displayed " + "in iphone simulator, Is it possible to " + "modify drop plot code so that the " + "output graph is \xe2\x80\xa8displayed " + "in iphone simulator.Now we are adding " + "the CSV file externally. I want to Call " + "the File through the code.." + ), + } + ) + + with option_context("display.max_columns", 20): + assert "StringCol" in repr(df) + + def test_latex_repr(self): + pytest.importorskip("jinja2") + expected = r"""\begin{tabular}{llll} +\toprule + & 0 & 1 & 2 \\ +\midrule +0 & $\alpha$ & b & c \\ +1 & 1 & 2 & 3 \\ +\bottomrule +\end{tabular} +""" + with option_context( + "styler.format.escape", None, "styler.render.repr", "latex" + ): + df = DataFrame([[r"$\alpha$", "b", "c"], [1, 2, 3]]) + result = df._repr_latex_() + assert result == expected + + # GH 12182 + assert df._repr_latex_() is None + + def test_repr_with_datetimeindex(self): + df = DataFrame({"A": [1, 2, 3]}, index=date_range("2000", periods=3)) + result = repr(df) + expected = " A\n2000-01-01 1\n2000-01-02 2\n2000-01-03 3" + assert result == expected + + def test_repr_with_intervalindex(self): + # https://github.com/pandas-dev/pandas/pull/24134/files + df = DataFrame( + {"A": [1, 2, 3, 4]}, index=IntervalIndex.from_breaks([0, 1, 2, 3, 4]) + ) + result = repr(df) + expected = " A\n(0, 1] 1\n(1, 2] 2\n(2, 3] 3\n(3, 4] 4" + assert result == expected + + def test_repr_with_categorical_index(self): + df = DataFrame({"A": [1, 2, 3]}, index=CategoricalIndex(["a", "b", "c"])) + result = repr(df) + expected = " A\na 1\nb 2\nc 3" + assert result == expected + + def test_repr_categorical_dates_periods(self): + # normal DataFrame + dt = date_range("2011-01-01 09:00", freq="h", periods=5, tz="US/Eastern") + p = period_range("2011-01", freq="M", periods=5) + df = DataFrame({"dt": dt, "p": p}) + exp = """ dt p +0 2011-01-01 09:00:00-05:00 2011-01 +1 2011-01-01 10:00:00-05:00 2011-02 +2 2011-01-01 11:00:00-05:00 2011-03 +3 2011-01-01 12:00:00-05:00 2011-04 +4 2011-01-01 13:00:00-05:00 2011-05""" + + assert repr(df) == exp + + df2 = DataFrame({"dt": Categorical(dt), "p": Categorical(p)}) + assert repr(df2) == exp + + @pytest.mark.parametrize("arg", [np.datetime64, np.timedelta64]) + @pytest.mark.parametrize( + "box, expected", + [[Series, "0 NaT\ndtype: object"], [DataFrame, " 0\n0 NaT"]], + ) + def test_repr_np_nat_with_object(self, arg, box, expected): + # GH 25445 + result = repr(box([arg("NaT")], dtype=object)) + assert result == expected + + def test_frame_datetime64_pre1900_repr(self): + df = DataFrame({"year": date_range("1/1/1700", periods=50, freq="YE-DEC")}) + # it works! + repr(df) + + def test_frame_to_string_with_periodindex(self): + index = PeriodIndex(["2011-1", "2011-2", "2011-3"], freq="M") + frame = DataFrame(np.random.default_rng(2).standard_normal((3, 4)), index=index) + + # it works! + frame.to_string() + + def test_to_string_ea_na_in_multiindex(self): + # GH#47986 + df = DataFrame( + {"a": [1, 2]}, + index=MultiIndex.from_arrays([Series([NA, 1], dtype="Int64")]), + ) + + result = df.to_string() + expected = """ a + 1 +1 2""" + assert result == expected + + def test_datetime64tz_slice_non_truncate(self): + # GH 30263 + df = DataFrame({"x": date_range("2019", periods=10, tz="UTC")}) + expected = repr(df) + df = df.iloc[:, :5] + result = repr(df) + assert result == expected + + def test_to_records_no_typeerror_in_repr(self): + # GH 48526 + df = DataFrame([["a", "b"], ["c", "d"], ["e", "f"]], columns=["left", "right"]) + df["record"] = df[["left", "right"]].to_records() + expected = """ left right record +0 a b [0, a, b] +1 c d [1, c, d] +2 e f [2, e, f]""" + result = repr(df) + assert result == expected + + def test_to_records_with_na_record_value(self): + # GH 48526 + df = DataFrame( + [["a", np.nan], ["c", "d"], ["e", "f"]], columns=["left", "right"] + ) + df["record"] = df[["left", "right"]].to_records() + expected = """ left right record +0 a NaN [0, a, nan] +1 c d [1, c, d] +2 e f [2, e, f]""" + result = repr(df) + assert result == expected + + def test_to_records_with_na_record(self): + # GH 48526 + df = DataFrame( + [["a", "b"], [np.nan, np.nan], ["e", "f"]], columns=[np.nan, "right"] + ) + df["record"] = df[[np.nan, "right"]].to_records() + expected = """ NaN right record +0 a b [0, a, b] +1 NaN NaN [1, nan, nan] +2 e f [2, e, f]""" + result = repr(df) + assert result == expected + + def test_to_records_with_inf_as_na_record(self): + # GH 48526 + expected = """ NaN inf record +0 inf b [0, inf, b] +1 NaN NaN [1, nan, nan] +2 e f [2, e, f]""" + msg = "use_inf_as_na option is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + with option_context("use_inf_as_na", True): + df = DataFrame( + [[np.inf, "b"], [np.nan, np.nan], ["e", "f"]], + columns=[np.nan, np.inf], + ) + df["record"] = df[[np.nan, np.inf]].to_records() + result = repr(df) + assert result == expected + + def test_to_records_with_inf_record(self): + # GH 48526 + expected = """ NaN inf record +0 inf b [0, inf, b] +1 NaN NaN [1, nan, nan] +2 e f [2, e, f]""" + msg = "use_inf_as_na option is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + with option_context("use_inf_as_na", False): + df = DataFrame( + [[np.inf, "b"], [np.nan, np.nan], ["e", "f"]], + columns=[np.nan, np.inf], + ) + df["record"] = df[[np.nan, np.inf]].to_records() + result = repr(df) + assert result == expected + + def test_masked_ea_with_formatter(self): + # GH#39336 + df = DataFrame( + { + "a": Series([0.123456789, 1.123456789], dtype="Float64"), + "b": Series([1, 2], dtype="Int64"), + } + ) + result = df.to_string(formatters=["{:.2f}".format, "{:.2f}".format]) + expected = """ a b +0 0.12 1.00 +1 1.12 2.00""" + assert result == expected + + def test_repr_ea_columns(self, any_string_dtype): + # GH#54797 + pytest.importorskip("pyarrow") + df = DataFrame({"long_column_name": [1, 2, 3], "col2": [4, 5, 6]}) + df.columns = df.columns.astype(any_string_dtype) + expected = """ long_column_name col2 +0 1 4 +1 2 5 +2 3 6""" + assert repr(df) == expected + + +@pytest.mark.parametrize( + "data,output", + [ + ([2, complex("nan"), 1], [" 2.0+0.0j", " NaN+0.0j", " 1.0+0.0j"]), + ([2, complex("nan"), -1], [" 2.0+0.0j", " NaN+0.0j", "-1.0+0.0j"]), + ([-2, complex("nan"), -1], ["-2.0+0.0j", " NaN+0.0j", "-1.0+0.0j"]), + ([-1.23j, complex("nan"), -1], ["-0.00-1.23j", " NaN+0.00j", "-1.00+0.00j"]), + ([1.23j, complex("nan"), 1.23], [" 0.00+1.23j", " NaN+0.00j", " 1.23+0.00j"]), + ( + [-1.23j, complex(np.nan, np.nan), 1], + ["-0.00-1.23j", " NaN+ NaNj", " 1.00+0.00j"], + ), + ( + [-1.23j, complex(1.2, np.nan), 1], + ["-0.00-1.23j", " 1.20+ NaNj", " 1.00+0.00j"], + ), + ( + [-1.23j, complex(np.nan, -1.2), 1], + ["-0.00-1.23j", " NaN-1.20j", " 1.00+0.00j"], + ), + ], +) +@pytest.mark.parametrize("as_frame", [True, False]) +def test_repr_with_complex_nans(data, output, as_frame): + # GH#53762, GH#53841 + obj = Series(np.array(data)) + if as_frame: + obj = obj.to_frame(name="val") + reprs = [f"{i} {val}" for i, val in enumerate(output)] + expected = f"{'val': >{len(reprs[0])}}\n" + "\n".join(reprs) + else: + reprs = [f"{i} {val}" for i, val in enumerate(output)] + expected = "\n".join(reprs) + "\ndtype: complex128" + assert str(obj) == expected, f"\n{str(obj)}\n\n{expected}" diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_stack_unstack.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_stack_unstack.py new file mode 100644 index 0000000000000000000000000000000000000000..de470fcda18ed47417ff84b88c6b48bc888cec8f --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_stack_unstack.py @@ -0,0 +1,2684 @@ +from datetime import datetime +import itertools +import re + +import numpy as np +import pytest + +from pandas._libs import lib +from pandas.errors import PerformanceWarning + +import pandas as pd +from pandas import ( + DataFrame, + Index, + MultiIndex, + Period, + Series, + Timedelta, + date_range, +) +import pandas._testing as tm +from pandas.core.reshape import reshape as reshape_lib + + +@pytest.fixture(params=[True, False]) +def future_stack(request): + return request.param + + +class TestDataFrameReshape: + def test_stack_unstack(self, float_frame, future_stack): + df = float_frame.copy() + df[:] = np.arange(np.prod(df.shape)).reshape(df.shape) + + stacked = df.stack(future_stack=future_stack) + stacked_df = DataFrame({"foo": stacked, "bar": stacked}) + + unstacked = stacked.unstack() + unstacked_df = stacked_df.unstack() + + tm.assert_frame_equal(unstacked, df) + tm.assert_frame_equal(unstacked_df["bar"], df) + + unstacked_cols = stacked.unstack(0) + unstacked_cols_df = stacked_df.unstack(0) + tm.assert_frame_equal(unstacked_cols.T, df) + tm.assert_frame_equal(unstacked_cols_df["bar"].T, df) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + def test_stack_mixed_level(self, future_stack): + # GH 18310 + levels = [range(3), [3, "a", "b"], [1, 2]] + + # flat columns: + df = DataFrame(1, index=levels[0], columns=levels[1]) + result = df.stack(future_stack=future_stack) + expected = Series(1, index=MultiIndex.from_product(levels[:2])) + tm.assert_series_equal(result, expected) + + # MultiIndex columns: + df = DataFrame(1, index=levels[0], columns=MultiIndex.from_product(levels[1:])) + result = df.stack(1, future_stack=future_stack) + expected = DataFrame( + 1, index=MultiIndex.from_product([levels[0], levels[2]]), columns=levels[1] + ) + tm.assert_frame_equal(result, expected) + + # as above, but used labels in level are actually of homogeneous type + result = df[["a", "b"]].stack(1, future_stack=future_stack) + expected = expected[["a", "b"]] + tm.assert_frame_equal(result, expected) + + def test_unstack_not_consolidated(self, using_array_manager): + # Gh#34708 + df = DataFrame({"x": [1, 2, np.nan], "y": [3.0, 4, np.nan]}) + df2 = df[["x"]] + df2["y"] = df["y"] + if not using_array_manager: + assert len(df2._mgr.blocks) == 2 + + res = df2.unstack() + expected = df.unstack() + tm.assert_series_equal(res, expected) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + def test_unstack_fill(self, future_stack): + # GH #9746: fill_value keyword argument for Series + # and DataFrame unstack + + # From a series + data = Series([1, 2, 4, 5], dtype=np.int16) + data.index = MultiIndex.from_tuples( + [("x", "a"), ("x", "b"), ("y", "b"), ("z", "a")] + ) + + result = data.unstack(fill_value=-1) + expected = DataFrame( + {"a": [1, -1, 5], "b": [2, 4, -1]}, index=["x", "y", "z"], dtype=np.int16 + ) + tm.assert_frame_equal(result, expected) + + # From a series with incorrect data type for fill_value + result = data.unstack(fill_value=0.5) + expected = DataFrame( + {"a": [1, 0.5, 5], "b": [2, 4, 0.5]}, index=["x", "y", "z"], dtype=float + ) + tm.assert_frame_equal(result, expected) + + # GH #13971: fill_value when unstacking multiple levels: + df = DataFrame( + {"x": ["a", "a", "b"], "y": ["j", "k", "j"], "z": [0, 1, 2], "w": [0, 1, 2]} + ).set_index(["x", "y", "z"]) + unstacked = df.unstack(["x", "y"], fill_value=0) + key = ("w", "b", "j") + expected = unstacked[key] + result = Series([0, 0, 2], index=unstacked.index, name=key) + tm.assert_series_equal(result, expected) + + stacked = unstacked.stack(["x", "y"], future_stack=future_stack) + stacked.index = stacked.index.reorder_levels(df.index.names) + # Workaround for GH #17886 (unnecessarily casts to float): + stacked = stacked.astype(np.int64) + result = stacked.loc[df.index] + tm.assert_frame_equal(result, df) + + # From a series + s = df["w"] + result = s.unstack(["x", "y"], fill_value=0) + expected = unstacked["w"] + tm.assert_frame_equal(result, expected) + + def test_unstack_fill_frame(self): + # From a dataframe + rows = [[1, 2], [3, 4], [5, 6], [7, 8]] + df = DataFrame(rows, columns=list("AB"), dtype=np.int32) + df.index = MultiIndex.from_tuples( + [("x", "a"), ("x", "b"), ("y", "b"), ("z", "a")] + ) + + result = df.unstack(fill_value=-1) + + rows = [[1, 3, 2, 4], [-1, 5, -1, 6], [7, -1, 8, -1]] + expected = DataFrame(rows, index=list("xyz"), dtype=np.int32) + expected.columns = MultiIndex.from_tuples( + [("A", "a"), ("A", "b"), ("B", "a"), ("B", "b")] + ) + tm.assert_frame_equal(result, expected) + + # From a mixed type dataframe + df["A"] = df["A"].astype(np.int16) + df["B"] = df["B"].astype(np.float64) + + result = df.unstack(fill_value=-1) + expected["A"] = expected["A"].astype(np.int16) + expected["B"] = expected["B"].astype(np.float64) + tm.assert_frame_equal(result, expected) + + # From a dataframe with incorrect data type for fill_value + result = df.unstack(fill_value=0.5) + + rows = [[1, 3, 2, 4], [0.5, 5, 0.5, 6], [7, 0.5, 8, 0.5]] + expected = DataFrame(rows, index=list("xyz"), dtype=float) + expected.columns = MultiIndex.from_tuples( + [("A", "a"), ("A", "b"), ("B", "a"), ("B", "b")] + ) + tm.assert_frame_equal(result, expected) + + def test_unstack_fill_frame_datetime(self): + # Test unstacking with date times + dv = date_range("2012-01-01", periods=4).values + data = Series(dv) + data.index = MultiIndex.from_tuples( + [("x", "a"), ("x", "b"), ("y", "b"), ("z", "a")] + ) + + result = data.unstack() + expected = DataFrame( + {"a": [dv[0], pd.NaT, dv[3]], "b": [dv[1], dv[2], pd.NaT]}, + index=["x", "y", "z"], + ) + tm.assert_frame_equal(result, expected) + + result = data.unstack(fill_value=dv[0]) + expected = DataFrame( + {"a": [dv[0], dv[0], dv[3]], "b": [dv[1], dv[2], dv[0]]}, + index=["x", "y", "z"], + ) + tm.assert_frame_equal(result, expected) + + def test_unstack_fill_frame_timedelta(self): + # Test unstacking with time deltas + td = [Timedelta(days=i) for i in range(4)] + data = Series(td) + data.index = MultiIndex.from_tuples( + [("x", "a"), ("x", "b"), ("y", "b"), ("z", "a")] + ) + + result = data.unstack() + expected = DataFrame( + {"a": [td[0], pd.NaT, td[3]], "b": [td[1], td[2], pd.NaT]}, + index=["x", "y", "z"], + ) + tm.assert_frame_equal(result, expected) + + result = data.unstack(fill_value=td[1]) + expected = DataFrame( + {"a": [td[0], td[1], td[3]], "b": [td[1], td[2], td[1]]}, + index=["x", "y", "z"], + ) + tm.assert_frame_equal(result, expected) + + def test_unstack_fill_frame_period(self): + # Test unstacking with period + periods = [ + Period("2012-01"), + Period("2012-02"), + Period("2012-03"), + Period("2012-04"), + ] + data = Series(periods) + data.index = MultiIndex.from_tuples( + [("x", "a"), ("x", "b"), ("y", "b"), ("z", "a")] + ) + + result = data.unstack() + expected = DataFrame( + {"a": [periods[0], None, periods[3]], "b": [periods[1], periods[2], None]}, + index=["x", "y", "z"], + ) + tm.assert_frame_equal(result, expected) + + result = data.unstack(fill_value=periods[1]) + expected = DataFrame( + { + "a": [periods[0], periods[1], periods[3]], + "b": [periods[1], periods[2], periods[1]], + }, + index=["x", "y", "z"], + ) + tm.assert_frame_equal(result, expected) + + def test_unstack_fill_frame_categorical(self): + # Test unstacking with categorical + data = Series(["a", "b", "c", "a"], dtype="category") + data.index = MultiIndex.from_tuples( + [("x", "a"), ("x", "b"), ("y", "b"), ("z", "a")] + ) + + # By default missing values will be NaN + result = data.unstack() + expected = DataFrame( + { + "a": pd.Categorical(list("axa"), categories=list("abc")), + "b": pd.Categorical(list("bcx"), categories=list("abc")), + }, + index=list("xyz"), + ) + tm.assert_frame_equal(result, expected) + + # Fill with non-category results in a ValueError + msg = r"Cannot setitem on a Categorical with a new category \(d\)" + with pytest.raises(TypeError, match=msg): + data.unstack(fill_value="d") + + # Fill with category value replaces missing values as expected + result = data.unstack(fill_value="c") + expected = DataFrame( + { + "a": pd.Categorical(list("aca"), categories=list("abc")), + "b": pd.Categorical(list("bcc"), categories=list("abc")), + }, + index=list("xyz"), + ) + tm.assert_frame_equal(result, expected) + + def test_unstack_tuplename_in_multiindex(self): + # GH 19966 + idx = MultiIndex.from_product( + [["a", "b", "c"], [1, 2, 3]], names=[("A", "a"), ("B", "b")] + ) + df = DataFrame({"d": [1] * 9, "e": [2] * 9}, index=idx) + result = df.unstack(("A", "a")) + + expected = DataFrame( + [[1, 1, 1, 2, 2, 2], [1, 1, 1, 2, 2, 2], [1, 1, 1, 2, 2, 2]], + columns=MultiIndex.from_tuples( + [ + ("d", "a"), + ("d", "b"), + ("d", "c"), + ("e", "a"), + ("e", "b"), + ("e", "c"), + ], + names=[None, ("A", "a")], + ), + index=Index([1, 2, 3], name=("B", "b")), + ) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "unstack_idx, expected_values, expected_index, expected_columns", + [ + ( + ("A", "a"), + [[1, 1, 2, 2], [1, 1, 2, 2], [1, 1, 2, 2], [1, 1, 2, 2]], + MultiIndex.from_tuples( + [(1, 3), (1, 4), (2, 3), (2, 4)], names=["B", "C"] + ), + MultiIndex.from_tuples( + [("d", "a"), ("d", "b"), ("e", "a"), ("e", "b")], + names=[None, ("A", "a")], + ), + ), + ( + (("A", "a"), "B"), + [[1, 1, 1, 1, 2, 2, 2, 2], [1, 1, 1, 1, 2, 2, 2, 2]], + Index([3, 4], name="C"), + MultiIndex.from_tuples( + [ + ("d", "a", 1), + ("d", "a", 2), + ("d", "b", 1), + ("d", "b", 2), + ("e", "a", 1), + ("e", "a", 2), + ("e", "b", 1), + ("e", "b", 2), + ], + names=[None, ("A", "a"), "B"], + ), + ), + ], + ) + def test_unstack_mixed_type_name_in_multiindex( + self, unstack_idx, expected_values, expected_index, expected_columns + ): + # GH 19966 + idx = MultiIndex.from_product( + [["a", "b"], [1, 2], [3, 4]], names=[("A", "a"), "B", "C"] + ) + df = DataFrame({"d": [1] * 8, "e": [2] * 8}, index=idx) + result = df.unstack(unstack_idx) + + expected = DataFrame( + expected_values, columns=expected_columns, index=expected_index + ) + tm.assert_frame_equal(result, expected) + + def test_unstack_preserve_dtypes(self): + # Checks fix for #11847 + df = DataFrame( + { + "state": ["IL", "MI", "NC"], + "index": ["a", "b", "c"], + "some_categories": Series(["a", "b", "c"]).astype("category"), + "A": np.random.default_rng(2).random(3), + "B": 1, + "C": "foo", + "D": pd.Timestamp("20010102"), + "E": Series([1.0, 50.0, 100.0]).astype("float32"), + "F": Series([3.0, 4.0, 5.0]).astype("float64"), + "G": False, + "H": Series([1, 200, 923442]).astype("int8"), + } + ) + + def unstack_and_compare(df, column_name): + unstacked1 = df.unstack([column_name]) + unstacked2 = df.unstack(column_name) + tm.assert_frame_equal(unstacked1, unstacked2) + + df1 = df.set_index(["state", "index"]) + unstack_and_compare(df1, "index") + + df1 = df.set_index(["state", "some_categories"]) + unstack_and_compare(df1, "some_categories") + + df1 = df.set_index(["F", "C"]) + unstack_and_compare(df1, "F") + + df1 = df.set_index(["G", "B", "state"]) + unstack_and_compare(df1, "B") + + df1 = df.set_index(["E", "A"]) + unstack_and_compare(df1, "E") + + df1 = df.set_index(["state", "index"]) + s = df1["A"] + unstack_and_compare(s, "index") + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + def test_stack_ints(self, future_stack): + columns = MultiIndex.from_tuples(list(itertools.product(range(3), repeat=3))) + df = DataFrame( + np.random.default_rng(2).standard_normal((30, 27)), columns=columns + ) + + tm.assert_frame_equal( + df.stack(level=[1, 2], future_stack=future_stack), + df.stack(level=1, future_stack=future_stack).stack( + level=1, future_stack=future_stack + ), + ) + tm.assert_frame_equal( + df.stack(level=[-2, -1], future_stack=future_stack), + df.stack(level=1, future_stack=future_stack).stack( + level=1, future_stack=future_stack + ), + ) + + df_named = df.copy() + return_value = df_named.columns.set_names(range(3), inplace=True) + assert return_value is None + + tm.assert_frame_equal( + df_named.stack(level=[1, 2], future_stack=future_stack), + df_named.stack(level=1, future_stack=future_stack).stack( + level=1, future_stack=future_stack + ), + ) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + def test_stack_mixed_levels(self, future_stack): + columns = MultiIndex.from_tuples( + [ + ("A", "cat", "long"), + ("B", "cat", "long"), + ("A", "dog", "short"), + ("B", "dog", "short"), + ], + names=["exp", "animal", "hair_length"], + ) + df = DataFrame( + np.random.default_rng(2).standard_normal((4, 4)), columns=columns + ) + + animal_hair_stacked = df.stack( + level=["animal", "hair_length"], future_stack=future_stack + ) + exp_hair_stacked = df.stack( + level=["exp", "hair_length"], future_stack=future_stack + ) + + # GH #8584: Need to check that stacking works when a number + # is passed that is both a level name and in the range of + # the level numbers + df2 = df.copy() + df2.columns.names = ["exp", "animal", 1] + tm.assert_frame_equal( + df2.stack(level=["animal", 1], future_stack=future_stack), + animal_hair_stacked, + check_names=False, + ) + tm.assert_frame_equal( + df2.stack(level=["exp", 1], future_stack=future_stack), + exp_hair_stacked, + check_names=False, + ) + + # When mixed types are passed and the ints are not level + # names, raise + msg = ( + "level should contain all level names or all level numbers, not " + "a mixture of the two" + ) + with pytest.raises(ValueError, match=msg): + df2.stack(level=["animal", 0], future_stack=future_stack) + + # GH #8584: Having 0 in the level names could raise a + # strange error about lexsort depth + df3 = df.copy() + df3.columns.names = ["exp", "animal", 0] + tm.assert_frame_equal( + df3.stack(level=["animal", 0], future_stack=future_stack), + animal_hair_stacked, + check_names=False, + ) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + def test_stack_int_level_names(self, future_stack): + columns = MultiIndex.from_tuples( + [ + ("A", "cat", "long"), + ("B", "cat", "long"), + ("A", "dog", "short"), + ("B", "dog", "short"), + ], + names=["exp", "animal", "hair_length"], + ) + df = DataFrame( + np.random.default_rng(2).standard_normal((4, 4)), columns=columns + ) + + exp_animal_stacked = df.stack( + level=["exp", "animal"], future_stack=future_stack + ) + animal_hair_stacked = df.stack( + level=["animal", "hair_length"], future_stack=future_stack + ) + exp_hair_stacked = df.stack( + level=["exp", "hair_length"], future_stack=future_stack + ) + + df2 = df.copy() + df2.columns.names = [0, 1, 2] + tm.assert_frame_equal( + df2.stack(level=[1, 2], future_stack=future_stack), + animal_hair_stacked, + check_names=False, + ) + tm.assert_frame_equal( + df2.stack(level=[0, 1], future_stack=future_stack), + exp_animal_stacked, + check_names=False, + ) + tm.assert_frame_equal( + df2.stack(level=[0, 2], future_stack=future_stack), + exp_hair_stacked, + check_names=False, + ) + + # Out-of-order int column names + df3 = df.copy() + df3.columns.names = [2, 0, 1] + tm.assert_frame_equal( + df3.stack(level=[0, 1], future_stack=future_stack), + animal_hair_stacked, + check_names=False, + ) + tm.assert_frame_equal( + df3.stack(level=[2, 0], future_stack=future_stack), + exp_animal_stacked, + check_names=False, + ) + tm.assert_frame_equal( + df3.stack(level=[2, 1], future_stack=future_stack), + exp_hair_stacked, + check_names=False, + ) + + def test_unstack_bool(self): + df = DataFrame( + [False, False], + index=MultiIndex.from_arrays([["a", "b"], ["c", "l"]]), + columns=["col"], + ) + rs = df.unstack() + xp = DataFrame( + np.array([[False, np.nan], [np.nan, False]], dtype=object), + index=["a", "b"], + columns=MultiIndex.from_arrays([["col", "col"], ["c", "l"]]), + ) + tm.assert_frame_equal(rs, xp) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + def test_unstack_level_binding(self, future_stack): + # GH9856 + mi = MultiIndex( + levels=[["foo", "bar"], ["one", "two"], ["a", "b"]], + codes=[[0, 0, 1, 1], [0, 1, 0, 1], [1, 0, 1, 0]], + names=["first", "second", "third"], + ) + s = Series(0, index=mi) + result = s.unstack([1, 2]).stack(0, future_stack=future_stack) + + expected_mi = MultiIndex( + levels=[["foo", "bar"], ["one", "two"]], + codes=[[0, 0, 1, 1], [0, 1, 0, 1]], + names=["first", "second"], + ) + + expected = DataFrame( + np.array( + [[0, np.nan], [np.nan, 0], [0, np.nan], [np.nan, 0]], dtype=np.float64 + ), + index=expected_mi, + columns=Index(["b", "a"], name="third"), + ) + + tm.assert_frame_equal(result, expected) + + def test_unstack_to_series(self, float_frame): + # check reversibility + data = float_frame.unstack() + + assert isinstance(data, Series) + undo = data.unstack().T + tm.assert_frame_equal(undo, float_frame) + + # check NA handling + data = DataFrame({"x": [1, 2, np.nan], "y": [3.0, 4, np.nan]}) + data.index = Index(["a", "b", "c"]) + result = data.unstack() + + midx = MultiIndex( + levels=[["x", "y"], ["a", "b", "c"]], + codes=[[0, 0, 0, 1, 1, 1], [0, 1, 2, 0, 1, 2]], + ) + expected = Series([1, 2, np.nan, 3, 4, np.nan], index=midx) + + tm.assert_series_equal(result, expected) + + # check composability of unstack + old_data = data.copy() + for _ in range(4): + data = data.unstack() + tm.assert_frame_equal(old_data, data) + + def test_unstack_dtypes(self, using_infer_string): + # GH 2929 + rows = [[1, 1, 3, 4], [1, 2, 3, 4], [2, 1, 3, 4], [2, 2, 3, 4]] + + df = DataFrame(rows, columns=list("ABCD")) + result = df.dtypes + expected = Series([np.dtype("int64")] * 4, index=list("ABCD")) + tm.assert_series_equal(result, expected) + + # single dtype + df2 = df.set_index(["A", "B"]) + df3 = df2.unstack("B") + result = df3.dtypes + expected = Series( + [np.dtype("int64")] * 4, + index=MultiIndex.from_arrays( + [["C", "C", "D", "D"], [1, 2, 1, 2]], names=(None, "B") + ), + ) + tm.assert_series_equal(result, expected) + + # mixed + df2 = df.set_index(["A", "B"]) + df2["C"] = 3.0 + df3 = df2.unstack("B") + result = df3.dtypes + expected = Series( + [np.dtype("float64")] * 2 + [np.dtype("int64")] * 2, + index=MultiIndex.from_arrays( + [["C", "C", "D", "D"], [1, 2, 1, 2]], names=(None, "B") + ), + ) + tm.assert_series_equal(result, expected) + df2["D"] = "foo" + df3 = df2.unstack("B") + result = df3.dtypes + dtype = ( + pd.StringDtype(na_value=np.nan) + if using_infer_string + else np.dtype("object") + ) + expected = Series( + [np.dtype("float64")] * 2 + [dtype] * 2, + index=MultiIndex.from_arrays( + [["C", "C", "D", "D"], [1, 2, 1, 2]], names=(None, "B") + ), + ) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize( + "c, d", + ( + (np.zeros(5), np.zeros(5)), + (np.arange(5, dtype="f8"), np.arange(5, 10, dtype="f8")), + ), + ) + def test_unstack_dtypes_mixed_date(self, c, d): + # GH7405 + df = DataFrame( + { + "A": ["a"] * 5, + "C": c, + "D": d, + "B": date_range("2012-01-01", periods=5), + } + ) + + right = df.iloc[:3].copy(deep=True) + + df = df.set_index(["A", "B"]) + df["D"] = df["D"].astype("int64") + + left = df.iloc[:3].unstack(0) + right = right.set_index(["A", "B"]).unstack(0) + right[("D", "a")] = right[("D", "a")].astype("int64") + + assert left.shape == (3, 2) + tm.assert_frame_equal(left, right) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + def test_unstack_non_unique_index_names(self, future_stack): + idx = MultiIndex.from_tuples([("a", "b"), ("c", "d")], names=["c1", "c1"]) + df = DataFrame([1, 2], index=idx) + msg = "The name c1 occurs multiple times, use a level number" + with pytest.raises(ValueError, match=msg): + df.unstack("c1") + + with pytest.raises(ValueError, match=msg): + df.T.stack("c1", future_stack=future_stack) + + def test_unstack_unused_levels(self): + # GH 17845: unused codes in index make unstack() cast int to float + idx = MultiIndex.from_product([["a"], ["A", "B", "C", "D"]])[:-1] + df = DataFrame([[1, 0]] * 3, index=idx) + + result = df.unstack() + exp_col = MultiIndex.from_product([[0, 1], ["A", "B", "C"]]) + expected = DataFrame([[1, 1, 1, 0, 0, 0]], index=["a"], columns=exp_col) + tm.assert_frame_equal(result, expected) + assert (result.columns.levels[1] == idx.levels[1]).all() + + # Unused items on both levels + levels = [[0, 1, 7], [0, 1, 2, 3]] + codes = [[0, 0, 1, 1], [0, 2, 0, 2]] + idx = MultiIndex(levels, codes) + block = np.arange(4).reshape(2, 2) + df = DataFrame(np.concatenate([block, block + 4]), index=idx) + result = df.unstack() + expected = DataFrame( + np.concatenate([block * 2, block * 2 + 1], axis=1), columns=idx + ) + tm.assert_frame_equal(result, expected) + assert (result.columns.levels[1] == idx.levels[1]).all() + + @pytest.mark.parametrize( + "level, idces, col_level, idx_level", + ( + (0, [13, 16, 6, 9, 2, 5, 8, 11], [np.nan, "a", 2], [np.nan, 5, 1]), + (1, [8, 11, 1, 4, 12, 15, 13, 16], [np.nan, 5, 1], [np.nan, "a", 2]), + ), + ) + def test_unstack_unused_levels_mixed_with_nan( + self, level, idces, col_level, idx_level + ): + # With mixed dtype and NaN + levels = [["a", 2, "c"], [1, 3, 5, 7]] + codes = [[0, -1, 1, 1], [0, 2, -1, 2]] + idx = MultiIndex(levels, codes) + data = np.arange(8) + df = DataFrame(data.reshape(4, 2), index=idx) + + result = df.unstack(level=level) + exp_data = np.zeros(18) * np.nan + exp_data[idces] = data + cols = MultiIndex.from_product([[0, 1], col_level]) + expected = DataFrame(exp_data.reshape(3, 6), index=idx_level, columns=cols) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("cols", [["A", "C"], slice(None)]) + def test_unstack_unused_level(self, cols): + # GH 18562 : unused codes on the unstacked level + df = DataFrame([[2010, "a", "I"], [2011, "b", "II"]], columns=["A", "B", "C"]) + + ind = df.set_index(["A", "B", "C"], drop=False) + selection = ind.loc[(slice(None), slice(None), "I"), cols] + result = selection.unstack() + + expected = ind.iloc[[0]][cols] + expected.columns = MultiIndex.from_product( + [expected.columns, ["I"]], names=[None, "C"] + ) + expected.index = expected.index.droplevel("C") + tm.assert_frame_equal(result, expected) + + def test_unstack_long_index(self): + # PH 32624: Error when using a lot of indices to unstack. + # The error occurred only, if a lot of indices are used. + df = DataFrame( + [[1]], + columns=MultiIndex.from_tuples([[0]], names=["c1"]), + index=MultiIndex.from_tuples( + [[0, 0, 1, 0, 0, 0, 1]], + names=["i1", "i2", "i3", "i4", "i5", "i6", "i7"], + ), + ) + result = df.unstack(["i2", "i3", "i4", "i5", "i6", "i7"]) + expected = DataFrame( + [[1]], + columns=MultiIndex.from_tuples( + [[0, 0, 1, 0, 0, 0, 1]], + names=["c1", "i2", "i3", "i4", "i5", "i6", "i7"], + ), + index=Index([0], name="i1"), + ) + tm.assert_frame_equal(result, expected) + + def test_unstack_multi_level_cols(self): + # PH 24729: Unstack a df with multi level columns + df = DataFrame( + [[0.0, 0.0], [0.0, 0.0]], + columns=MultiIndex.from_tuples( + [["B", "C"], ["B", "D"]], names=["c1", "c2"] + ), + index=MultiIndex.from_tuples( + [[10, 20, 30], [10, 20, 40]], names=["i1", "i2", "i3"] + ), + ) + assert df.unstack(["i2", "i1"]).columns.names[-2:] == ["i2", "i1"] + + def test_unstack_multi_level_rows_and_cols(self): + # PH 28306: Unstack df with multi level cols and rows + df = DataFrame( + [[1, 2], [3, 4], [-1, -2], [-3, -4]], + columns=MultiIndex.from_tuples([["a", "b", "c"], ["d", "e", "f"]]), + index=MultiIndex.from_tuples( + [ + ["m1", "P3", 222], + ["m1", "A5", 111], + ["m2", "P3", 222], + ["m2", "A5", 111], + ], + names=["i1", "i2", "i3"], + ), + ) + result = df.unstack(["i3", "i2"]) + expected = df.unstack(["i3"]).unstack(["i2"]) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("idx", [("jim", "joe"), ("joe", "jim")]) + @pytest.mark.parametrize("lev", list(range(2))) + def test_unstack_nan_index1(self, idx, lev): + # GH7466 + def cast(val): + val_str = "" if val != val else val + return f"{val_str:1}" + + df = DataFrame( + { + "jim": ["a", "b", np.nan, "d"], + "joe": ["w", "x", "y", "z"], + "jolie": ["a.w", "b.x", " .y", "d.z"], + } + ) + + left = df.set_index(["jim", "joe"]).unstack()["jolie"] + right = df.set_index(["joe", "jim"]).unstack()["jolie"].T + tm.assert_frame_equal(left, right) + + mi = df.set_index(list(idx)) + udf = mi.unstack(level=lev) + assert udf.notna().values.sum() == len(df) + mk_list = lambda a: list(a) if isinstance(a, tuple) else [a] + rows, cols = udf["jolie"].notna().values.nonzero() + for i, j in zip(rows, cols): + left = sorted(udf["jolie"].iloc[i, j].split(".")) + right = mk_list(udf["jolie"].index[i]) + mk_list(udf["jolie"].columns[j]) + right = sorted(map(cast, right)) + assert left == right + + @pytest.mark.parametrize("idx", itertools.permutations(["1st", "2nd", "3rd"])) + @pytest.mark.parametrize("lev", list(range(3))) + @pytest.mark.parametrize("col", ["4th", "5th"]) + def test_unstack_nan_index_repeats(self, idx, lev, col): + def cast(val): + val_str = "" if val != val else val + return f"{val_str:1}" + + df = DataFrame( + { + "1st": ["d"] * 3 + + [np.nan] * 5 + + ["a"] * 2 + + ["c"] * 3 + + ["e"] * 2 + + ["b"] * 5, + "2nd": ["y"] * 2 + + ["w"] * 3 + + [np.nan] * 3 + + ["z"] * 4 + + [np.nan] * 3 + + ["x"] * 3 + + [np.nan] * 2, + "3rd": [ + 67, + 39, + 53, + 72, + 57, + 80, + 31, + 18, + 11, + 30, + 59, + 50, + 62, + 59, + 76, + 52, + 14, + 53, + 60, + 51, + ], + } + ) + + df["4th"], df["5th"] = ( + df.apply(lambda r: ".".join(map(cast, r)), axis=1), + df.apply(lambda r: ".".join(map(cast, r.iloc[::-1])), axis=1), + ) + + mi = df.set_index(list(idx)) + udf = mi.unstack(level=lev) + assert udf.notna().values.sum() == 2 * len(df) + mk_list = lambda a: list(a) if isinstance(a, tuple) else [a] + rows, cols = udf[col].notna().values.nonzero() + for i, j in zip(rows, cols): + left = sorted(udf[col].iloc[i, j].split(".")) + right = mk_list(udf[col].index[i]) + mk_list(udf[col].columns[j]) + right = sorted(map(cast, right)) + assert left == right + + def test_unstack_nan_index2(self): + # GH7403 + df = DataFrame({"A": list("aaaabbbb"), "B": range(8), "C": range(8)}) + # Explicit cast to avoid implicit cast when setting to np.nan + df = df.astype({"B": "float"}) + df.iloc[3, 1] = np.nan + left = df.set_index(["A", "B"]).unstack(0) + + vals = [ + [3, 0, 1, 2, np.nan, np.nan, np.nan, np.nan], + [np.nan, np.nan, np.nan, np.nan, 4, 5, 6, 7], + ] + vals = list(map(list, zip(*vals))) + idx = Index([np.nan, 0, 1, 2, 4, 5, 6, 7], name="B") + cols = MultiIndex( + levels=[["C"], ["a", "b"]], codes=[[0, 0], [0, 1]], names=[None, "A"] + ) + + right = DataFrame(vals, columns=cols, index=idx) + tm.assert_frame_equal(left, right) + + df = DataFrame({"A": list("aaaabbbb"), "B": list(range(4)) * 2, "C": range(8)}) + # Explicit cast to avoid implicit cast when setting to np.nan + df = df.astype({"B": "float"}) + df.iloc[2, 1] = np.nan + left = df.set_index(["A", "B"]).unstack(0) + + vals = [[2, np.nan], [0, 4], [1, 5], [np.nan, 6], [3, 7]] + cols = MultiIndex( + levels=[["C"], ["a", "b"]], codes=[[0, 0], [0, 1]], names=[None, "A"] + ) + idx = Index([np.nan, 0, 1, 2, 3], name="B") + right = DataFrame(vals, columns=cols, index=idx) + tm.assert_frame_equal(left, right) + + df = DataFrame({"A": list("aaaabbbb"), "B": list(range(4)) * 2, "C": range(8)}) + # Explicit cast to avoid implicit cast when setting to np.nan + df = df.astype({"B": "float"}) + df.iloc[3, 1] = np.nan + left = df.set_index(["A", "B"]).unstack(0) + + vals = [[3, np.nan], [0, 4], [1, 5], [2, 6], [np.nan, 7]] + cols = MultiIndex( + levels=[["C"], ["a", "b"]], codes=[[0, 0], [0, 1]], names=[None, "A"] + ) + idx = Index([np.nan, 0, 1, 2, 3], name="B") + right = DataFrame(vals, columns=cols, index=idx) + tm.assert_frame_equal(left, right) + + def test_unstack_nan_index3(self, using_array_manager): + # GH7401 + df = DataFrame( + { + "A": list("aaaaabbbbb"), + "B": (date_range("2012-01-01", periods=5).tolist() * 2), + "C": np.arange(10), + } + ) + + df.iloc[3, 1] = np.nan + left = df.set_index(["A", "B"]).unstack() + + vals = np.array([[3, 0, 1, 2, np.nan, 4], [np.nan, 5, 6, 7, 8, 9]]) + idx = Index(["a", "b"], name="A") + cols = MultiIndex( + levels=[["C"], date_range("2012-01-01", periods=5)], + codes=[[0, 0, 0, 0, 0, 0], [-1, 0, 1, 2, 3, 4]], + names=[None, "B"], + ) + + right = DataFrame(vals, columns=cols, index=idx) + if using_array_manager: + # INFO(ArrayManager) with ArrayManager preserve dtype where possible + cols = right.columns[[1, 2, 3, 5]] + right[cols] = right[cols].astype(df["C"].dtype) + tm.assert_frame_equal(left, right) + + def test_unstack_nan_index4(self): + # GH4862 + vals = [ + ["Hg", np.nan, np.nan, 680585148], + ["U", 0.0, np.nan, 680585148], + ["Pb", 7.07e-06, np.nan, 680585148], + ["Sn", 2.3614e-05, 0.0133, 680607017], + ["Ag", 0.0, 0.0133, 680607017], + ["Hg", -0.00015, 0.0133, 680607017], + ] + df = DataFrame( + vals, + columns=["agent", "change", "dosage", "s_id"], + index=[17263, 17264, 17265, 17266, 17267, 17268], + ) + + left = df.copy().set_index(["s_id", "dosage", "agent"]).unstack() + + vals = [ + [np.nan, np.nan, 7.07e-06, np.nan, 0.0], + [0.0, -0.00015, np.nan, 2.3614e-05, np.nan], + ] + + idx = MultiIndex( + levels=[[680585148, 680607017], [0.0133]], + codes=[[0, 1], [-1, 0]], + names=["s_id", "dosage"], + ) + + cols = MultiIndex( + levels=[["change"], ["Ag", "Hg", "Pb", "Sn", "U"]], + codes=[[0, 0, 0, 0, 0], [0, 1, 2, 3, 4]], + names=[None, "agent"], + ) + + right = DataFrame(vals, columns=cols, index=idx) + tm.assert_frame_equal(left, right) + + left = df.loc[17264:].copy().set_index(["s_id", "dosage", "agent"]) + tm.assert_frame_equal(left.unstack(), right) + + def test_unstack_nan_index5(self): + # GH9497 - multiple unstack with nulls + df = DataFrame( + { + "1st": [1, 2, 1, 2, 1, 2], + "2nd": date_range("2014-02-01", periods=6, freq="D"), + "jim": 100 + np.arange(6), + "joe": (np.random.default_rng(2).standard_normal(6) * 10).round(2), + } + ) + + df["3rd"] = df["2nd"] - pd.Timestamp("2014-02-02") + df.loc[1, "2nd"] = df.loc[3, "2nd"] = np.nan + df.loc[1, "3rd"] = df.loc[4, "3rd"] = np.nan + + left = df.set_index(["1st", "2nd", "3rd"]).unstack(["2nd", "3rd"]) + assert left.notna().values.sum() == 2 * len(df) + + for col in ["jim", "joe"]: + for _, r in df.iterrows(): + key = r["1st"], (col, r["2nd"], r["3rd"]) + assert r[col] == left.loc[key] + + def test_stack_datetime_column_multiIndex(self, future_stack): + # GH 8039 + t = datetime(2014, 1, 1) + df = DataFrame([1, 2, 3, 4], columns=MultiIndex.from_tuples([(t, "A", "B")])) + warn = None if future_stack else FutureWarning + msg = "The previous implementation of stack is deprecated" + with tm.assert_produces_warning(warn, match=msg): + result = df.stack(future_stack=future_stack) + + eidx = MultiIndex.from_product([(0, 1, 2, 3), ("B",)]) + ecols = MultiIndex.from_tuples([(t, "A")]) + expected = DataFrame([1, 2, 3, 4], index=eidx, columns=ecols) + tm.assert_frame_equal(result, expected) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + @pytest.mark.parametrize( + "multiindex_columns", + [ + [0, 1, 2, 3, 4], + [0, 1, 2, 3], + [0, 1, 2, 4], + [0, 1, 2], + [1, 2, 3], + [2, 3, 4], + [0, 1], + [0, 2], + [0, 3], + [0], + [2], + [4], + [4, 3, 2, 1, 0], + [3, 2, 1, 0], + [4, 2, 1, 0], + [2, 1, 0], + [3, 2, 1], + [4, 3, 2], + [1, 0], + [2, 0], + [3, 0], + ], + ) + @pytest.mark.parametrize("level", (-1, 0, 1, [0, 1], [1, 0])) + def test_stack_partial_multiIndex(self, multiindex_columns, level, future_stack): + # GH 8844 + dropna = False if not future_stack else lib.no_default + full_multiindex = MultiIndex.from_tuples( + [("B", "x"), ("B", "z"), ("A", "y"), ("C", "x"), ("C", "u")], + names=["Upper", "Lower"], + ) + multiindex = full_multiindex[multiindex_columns] + df = DataFrame( + np.arange(3 * len(multiindex)).reshape(3, len(multiindex)), + columns=multiindex, + ) + result = df.stack(level=level, dropna=dropna, future_stack=future_stack) + + if isinstance(level, int) and not future_stack: + # Stacking a single level should not make any all-NaN rows, + # so df.stack(level=level, dropna=False) should be the same + # as df.stack(level=level, dropna=True). + expected = df.stack(level=level, dropna=True, future_stack=future_stack) + if isinstance(expected, Series): + tm.assert_series_equal(result, expected) + else: + tm.assert_frame_equal(result, expected) + + df.columns = MultiIndex.from_tuples( + df.columns.to_numpy(), names=df.columns.names + ) + expected = df.stack(level=level, dropna=dropna, future_stack=future_stack) + if isinstance(expected, Series): + tm.assert_series_equal(result, expected) + else: + tm.assert_frame_equal(result, expected) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + def test_stack_full_multiIndex(self, future_stack): + # GH 8844 + full_multiindex = MultiIndex.from_tuples( + [("B", "x"), ("B", "z"), ("A", "y"), ("C", "x"), ("C", "u")], + names=["Upper", "Lower"], + ) + df = DataFrame(np.arange(6).reshape(2, 3), columns=full_multiindex[[0, 1, 3]]) + dropna = False if not future_stack else lib.no_default + result = df.stack(dropna=dropna, future_stack=future_stack) + expected = DataFrame( + [[0, 2], [1, np.nan], [3, 5], [4, np.nan]], + index=MultiIndex( + levels=[[0, 1], ["u", "x", "y", "z"]], + codes=[[0, 0, 1, 1], [1, 3, 1, 3]], + names=[None, "Lower"], + ), + columns=Index(["B", "C"], name="Upper"), + ) + expected["B"] = expected["B"].astype(df.dtypes.iloc[0]) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("ordered", [False, True]) + def test_stack_preserve_categorical_dtype(self, ordered, future_stack): + # GH13854 + cidx = pd.CategoricalIndex(list("yxz"), categories=list("xyz"), ordered=ordered) + df = DataFrame([[10, 11, 12]], columns=cidx) + result = df.stack(future_stack=future_stack) + + # `MultiIndex.from_product` preserves categorical dtype - + # it's tested elsewhere. + midx = MultiIndex.from_product([df.index, cidx]) + expected = Series([10, 11, 12], index=midx) + + tm.assert_series_equal(result, expected) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + @pytest.mark.parametrize("ordered", [False, True]) + @pytest.mark.parametrize( + "labels,data", + [ + (list("xyz"), [10, 11, 12, 13, 14, 15]), + (list("zyx"), [14, 15, 12, 13, 10, 11]), + ], + ) + def test_stack_multi_preserve_categorical_dtype( + self, ordered, labels, data, future_stack + ): + # GH-36991 + cidx = pd.CategoricalIndex(labels, categories=sorted(labels), ordered=ordered) + cidx2 = pd.CategoricalIndex(["u", "v"], ordered=ordered) + midx = MultiIndex.from_product([cidx, cidx2]) + df = DataFrame([sorted(data)], columns=midx) + result = df.stack([0, 1], future_stack=future_stack) + + labels = labels if future_stack else sorted(labels) + s_cidx = pd.CategoricalIndex(labels, ordered=ordered) + expected_data = sorted(data) if future_stack else data + expected = Series( + expected_data, index=MultiIndex.from_product([[0], s_cidx, cidx2]) + ) + + tm.assert_series_equal(result, expected) + + def test_stack_preserve_categorical_dtype_values(self, future_stack): + # GH-23077 + cat = pd.Categorical(["a", "a", "b", "c"]) + df = DataFrame({"A": cat, "B": cat}) + result = df.stack(future_stack=future_stack) + index = MultiIndex.from_product([[0, 1, 2, 3], ["A", "B"]]) + expected = Series( + pd.Categorical(["a", "a", "a", "a", "b", "b", "c", "c"]), index=index + ) + tm.assert_series_equal(result, expected) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + @pytest.mark.filterwarnings("ignore:Downcasting object dtype arrays:FutureWarning") + @pytest.mark.parametrize( + "index, columns", + [ + ([0, 0, 1, 1], MultiIndex.from_product([[1, 2], ["a", "b"]])), + ([0, 0, 2, 3], MultiIndex.from_product([[1, 2], ["a", "b"]])), + ([0, 1, 2, 3], MultiIndex.from_product([[1, 2], ["a", "b"]])), + ], + ) + def test_stack_multi_columns_non_unique_index(self, index, columns, future_stack): + # GH-28301 + + df = DataFrame(index=index, columns=columns).fillna(1) + stacked = df.stack(future_stack=future_stack) + new_index = MultiIndex.from_tuples(stacked.index.to_numpy()) + expected = DataFrame( + stacked.to_numpy(), index=new_index, columns=stacked.columns + ) + tm.assert_frame_equal(stacked, expected) + stacked_codes = np.asarray(stacked.index.codes) + expected_codes = np.asarray(new_index.codes) + tm.assert_numpy_array_equal(stacked_codes, expected_codes) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + @pytest.mark.parametrize( + "vals1, vals2, dtype1, dtype2, expected_dtype", + [ + ([1, 2], [3.0, 4.0], "Int64", "Float64", "Float64"), + ([1, 2], ["foo", "bar"], "Int64", "string", "object"), + ], + ) + def test_stack_multi_columns_mixed_extension_types( + self, vals1, vals2, dtype1, dtype2, expected_dtype, future_stack + ): + # GH45740 + df = DataFrame( + { + ("A", 1): Series(vals1, dtype=dtype1), + ("A", 2): Series(vals2, dtype=dtype2), + } + ) + result = df.stack(future_stack=future_stack) + expected = ( + df.astype(object).stack(future_stack=future_stack).astype(expected_dtype) + ) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("level", [0, 1]) + def test_unstack_mixed_extension_types(self, level): + index = MultiIndex.from_tuples([("A", 0), ("A", 1), ("B", 1)], names=["a", "b"]) + df = DataFrame( + { + "A": pd.array([0, 1, None], dtype="Int64"), + "B": pd.Categorical(["a", "a", "b"]), + }, + index=index, + ) + + result = df.unstack(level=level) + expected = df.astype(object).unstack(level=level) + if level == 0: + expected[("A", "B")] = expected[("A", "B")].fillna(pd.NA) + else: + expected[("A", 0)] = expected[("A", 0)].fillna(pd.NA) + + expected_dtypes = Series( + [df.A.dtype] * 2 + [df.B.dtype] * 2, index=result.columns + ) + tm.assert_series_equal(result.dtypes, expected_dtypes) + tm.assert_frame_equal(result.astype(object), expected) + + @pytest.mark.parametrize("level", [0, "baz"]) + def test_unstack_swaplevel_sortlevel(self, level): + # GH 20994 + mi = MultiIndex.from_product([[0], ["d", "c"]], names=["bar", "baz"]) + df = DataFrame([[0, 2], [1, 3]], index=mi, columns=["B", "A"]) + df.columns.name = "foo" + + expected = DataFrame( + [[3, 1, 2, 0]], + columns=MultiIndex.from_tuples( + [("c", "A"), ("c", "B"), ("d", "A"), ("d", "B")], names=["baz", "foo"] + ), + ) + expected.index.name = "bar" + + result = df.unstack().swaplevel(axis=1).sort_index(axis=1, level=level) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("dtype", ["float64", "Float64"]) +def test_unstack_sort_false(frame_or_series, dtype): + # GH 15105 + index = MultiIndex.from_tuples( + [("two", "z", "b"), ("two", "y", "a"), ("one", "z", "b"), ("one", "y", "a")] + ) + obj = frame_or_series(np.arange(1.0, 5.0), index=index, dtype=dtype) + result = obj.unstack(level=-1, sort=False) + + if frame_or_series is DataFrame: + expected_columns = MultiIndex.from_tuples([(0, "b"), (0, "a")]) + else: + expected_columns = ["b", "a"] + expected = DataFrame( + [[1.0, np.nan], [np.nan, 2.0], [3.0, np.nan], [np.nan, 4.0]], + columns=expected_columns, + index=MultiIndex.from_tuples( + [("two", "z"), ("two", "y"), ("one", "z"), ("one", "y")] + ), + dtype=dtype, + ) + tm.assert_frame_equal(result, expected) + + result = obj.unstack(level=[1, 2], sort=False) + + if frame_or_series is DataFrame: + expected_columns = MultiIndex.from_tuples([(0, "z", "b"), (0, "y", "a")]) + else: + expected_columns = MultiIndex.from_tuples([("z", "b"), ("y", "a")]) + expected = DataFrame( + [[1.0, 2.0], [3.0, 4.0]], + index=["two", "one"], + columns=expected_columns, + dtype=dtype, + ) + tm.assert_frame_equal(result, expected) + + +def test_unstack_fill_frame_object(): + # GH12815 Test unstacking with object. + data = Series(["a", "b", "c", "a"], dtype="object") + data.index = MultiIndex.from_tuples( + [("x", "a"), ("x", "b"), ("y", "b"), ("z", "a")] + ) + + # By default missing values will be NaN + result = data.unstack() + expected = DataFrame( + {"a": ["a", np.nan, "a"], "b": ["b", "c", np.nan]}, + index=list("xyz"), + dtype=object, + ) + tm.assert_frame_equal(result, expected) + + # Fill with any value replaces missing values as expected + result = data.unstack(fill_value="d") + expected = DataFrame( + {"a": ["a", "d", "a"], "b": ["b", "c", "d"]}, index=list("xyz"), dtype=object + ) + tm.assert_frame_equal(result, expected) + + +def test_unstack_timezone_aware_values(): + # GH 18338 + df = DataFrame( + { + "timestamp": [pd.Timestamp("2017-08-27 01:00:00.709949+0000", tz="UTC")], + "a": ["a"], + "b": ["b"], + "c": ["c"], + }, + columns=["timestamp", "a", "b", "c"], + ) + result = df.set_index(["a", "b"]).unstack() + expected = DataFrame( + [[pd.Timestamp("2017-08-27 01:00:00.709949+0000", tz="UTC"), "c"]], + index=Index(["a"], name="a"), + columns=MultiIndex( + levels=[["timestamp", "c"], ["b"]], + codes=[[0, 1], [0, 0]], + names=[None, "b"], + ), + ) + tm.assert_frame_equal(result, expected) + + +def test_stack_timezone_aware_values(future_stack): + # GH 19420 + ts = date_range(freq="D", start="20180101", end="20180103", tz="America/New_York") + df = DataFrame({"A": ts}, index=["a", "b", "c"]) + result = df.stack(future_stack=future_stack) + expected = Series( + ts, + index=MultiIndex(levels=[["a", "b", "c"], ["A"]], codes=[[0, 1, 2], [0, 0, 0]]), + ) + tm.assert_series_equal(result, expected) + + +@pytest.mark.filterwarnings("ignore:The previous implementation of stack is deprecated") +@pytest.mark.parametrize("dropna", [True, False, lib.no_default]) +def test_stack_empty_frame(dropna, future_stack): + # GH 36113 + levels = [np.array([], dtype=np.int64), np.array([], dtype=np.int64)] + expected = Series(dtype=np.float64, index=MultiIndex(levels=levels, codes=[[], []])) + if future_stack and dropna is not lib.no_default: + with pytest.raises(ValueError, match="dropna must be unspecified"): + DataFrame(dtype=np.float64).stack(dropna=dropna, future_stack=future_stack) + else: + result = DataFrame(dtype=np.float64).stack( + dropna=dropna, future_stack=future_stack + ) + tm.assert_series_equal(result, expected) + + +@pytest.mark.filterwarnings("ignore:The previous implementation of stack is deprecated") +@pytest.mark.parametrize("dropna", [True, False, lib.no_default]) +@pytest.mark.parametrize("fill_value", [None, 0]) +def test_stack_unstack_empty_frame(dropna, fill_value, future_stack): + # GH 36113 + if future_stack and dropna is not lib.no_default: + with pytest.raises(ValueError, match="dropna must be unspecified"): + DataFrame(dtype=np.int64).stack( + dropna=dropna, future_stack=future_stack + ).unstack(fill_value=fill_value) + else: + result = ( + DataFrame(dtype=np.int64) + .stack(dropna=dropna, future_stack=future_stack) + .unstack(fill_value=fill_value) + ) + expected = DataFrame(dtype=np.int64) + tm.assert_frame_equal(result, expected) + + +def test_unstack_single_index_series(): + # GH 36113 + msg = r"index must be a MultiIndex to unstack.*" + with pytest.raises(ValueError, match=msg): + Series(dtype=np.int64).unstack() + + +def test_unstacking_multi_index_df(): + # see gh-30740 + df = DataFrame( + { + "name": ["Alice", "Bob"], + "score": [9.5, 8], + "employed": [False, True], + "kids": [0, 0], + "gender": ["female", "male"], + } + ) + df = df.set_index(["name", "employed", "kids", "gender"]) + df = df.unstack(["gender"], fill_value=0) + expected = df.unstack("employed", fill_value=0).unstack("kids", fill_value=0) + result = df.unstack(["employed", "kids"], fill_value=0) + expected = DataFrame( + [[9.5, 0.0, 0.0, 0.0], [0.0, 0.0, 0.0, 8.0]], + index=Index(["Alice", "Bob"], name="name"), + columns=MultiIndex.from_tuples( + [ + ("score", "female", False, 0), + ("score", "female", True, 0), + ("score", "male", False, 0), + ("score", "male", True, 0), + ], + names=[None, "gender", "employed", "kids"], + ), + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.filterwarnings("ignore:The previous implementation of stack is deprecated") +def test_stack_positional_level_duplicate_column_names(future_stack): + # https://github.com/pandas-dev/pandas/issues/36353 + columns = MultiIndex.from_product([("x", "y"), ("y", "z")], names=["a", "a"]) + df = DataFrame([[1, 1, 1, 1]], columns=columns) + result = df.stack(0, future_stack=future_stack) + + new_columns = Index(["y", "z"], name="a") + new_index = MultiIndex.from_tuples([(0, "x"), (0, "y")], names=[None, "a"]) + expected = DataFrame([[1, 1], [1, 1]], index=new_index, columns=new_columns) + + tm.assert_frame_equal(result, expected) + + +def test_unstack_non_slice_like_blocks(using_array_manager): + # Case where the mgr_locs of a DataFrame's underlying blocks are not slice-like + + mi = MultiIndex.from_product([range(5), ["A", "B", "C"]]) + df = DataFrame( + { + 0: np.random.default_rng(2).standard_normal(15), + 1: np.random.default_rng(2).standard_normal(15).astype(np.int64), + 2: np.random.default_rng(2).standard_normal(15), + 3: np.random.default_rng(2).standard_normal(15), + }, + index=mi, + ) + if not using_array_manager: + assert any(not x.mgr_locs.is_slice_like for x in df._mgr.blocks) + + res = df.unstack() + + expected = pd.concat([df[n].unstack() for n in range(4)], keys=range(4), axis=1) + tm.assert_frame_equal(res, expected) + + +@pytest.mark.filterwarnings("ignore:The previous implementation of stack is deprecated") +def test_stack_sort_false(future_stack): + # GH 15105 + data = [[1, 2, 3.0, 4.0], [2, 3, 4.0, 5.0], [3, 4, np.nan, np.nan]] + df = DataFrame( + data, + columns=MultiIndex( + levels=[["B", "A"], ["x", "y"]], codes=[[0, 0, 1, 1], [0, 1, 0, 1]] + ), + ) + kwargs = {} if future_stack else {"sort": False} + result = df.stack(level=0, future_stack=future_stack, **kwargs) + if future_stack: + expected = DataFrame( + { + "x": [1.0, 3.0, 2.0, 4.0, 3.0, np.nan], + "y": [2.0, 4.0, 3.0, 5.0, 4.0, np.nan], + }, + index=MultiIndex.from_arrays( + [[0, 0, 1, 1, 2, 2], ["B", "A", "B", "A", "B", "A"]] + ), + ) + else: + expected = DataFrame( + {"x": [1.0, 3.0, 2.0, 4.0, 3.0], "y": [2.0, 4.0, 3.0, 5.0, 4.0]}, + index=MultiIndex.from_arrays([[0, 0, 1, 1, 2], ["B", "A", "B", "A", "B"]]), + ) + tm.assert_frame_equal(result, expected) + + # Codes sorted in this call + df = DataFrame( + data, + columns=MultiIndex.from_arrays([["B", "B", "A", "A"], ["x", "y", "x", "y"]]), + ) + kwargs = {} if future_stack else {"sort": False} + result = df.stack(level=0, future_stack=future_stack, **kwargs) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.filterwarnings("ignore:The previous implementation of stack is deprecated") +def test_stack_sort_false_multi_level(future_stack): + # GH 15105 + idx = MultiIndex.from_tuples([("weight", "kg"), ("height", "m")]) + df = DataFrame([[1.0, 2.0], [3.0, 4.0]], index=["cat", "dog"], columns=idx) + kwargs = {} if future_stack else {"sort": False} + result = df.stack([0, 1], future_stack=future_stack, **kwargs) + expected_index = MultiIndex.from_tuples( + [ + ("cat", "weight", "kg"), + ("cat", "height", "m"), + ("dog", "weight", "kg"), + ("dog", "height", "m"), + ] + ) + expected = Series([1.0, 2.0, 3.0, 4.0], index=expected_index) + tm.assert_series_equal(result, expected) + + +class TestStackUnstackMultiLevel: + def test_unstack(self, multiindex_year_month_day_dataframe_random_data): + # just check that it works for now + ymd = multiindex_year_month_day_dataframe_random_data + + unstacked = ymd.unstack() + unstacked.unstack() + + # test that ints work + ymd.astype(int).unstack() + + # test that int32 work + ymd.astype(np.int32).unstack() + + @pytest.mark.parametrize( + "result_rows,result_columns,index_product,expected_row", + [ + ( + [[1, 1, None, None, 30.0, None], [2, 2, None, None, 30.0, None]], + ["ix1", "ix2", "col1", "col2", "col3", "col4"], + 2, + [None, None, 30.0, None], + ), + ( + [[1, 1, None, None, 30.0], [2, 2, None, None, 30.0]], + ["ix1", "ix2", "col1", "col2", "col3"], + 2, + [None, None, 30.0], + ), + ( + [[1, 1, None, None, 30.0], [2, None, None, None, 30.0]], + ["ix1", "ix2", "col1", "col2", "col3"], + None, + [None, None, 30.0], + ), + ], + ) + def test_unstack_partial( + self, result_rows, result_columns, index_product, expected_row + ): + # check for regressions on this issue: + # https://github.com/pandas-dev/pandas/issues/19351 + # make sure DataFrame.unstack() works when its run on a subset of the DataFrame + # and the Index levels contain values that are not present in the subset + result = DataFrame(result_rows, columns=result_columns).set_index( + ["ix1", "ix2"] + ) + result = result.iloc[1:2].unstack("ix2") + expected = DataFrame( + [expected_row], + columns=MultiIndex.from_product( + [result_columns[2:], [index_product]], names=[None, "ix2"] + ), + index=Index([2], name="ix1"), + ) + tm.assert_frame_equal(result, expected) + + def test_unstack_multiple_no_empty_columns(self): + index = MultiIndex.from_tuples( + [(0, "foo", 0), (0, "bar", 0), (1, "baz", 1), (1, "qux", 1)] + ) + + s = Series(np.random.default_rng(2).standard_normal(4), index=index) + + unstacked = s.unstack([1, 2]) + expected = unstacked.dropna(axis=1, how="all") + tm.assert_frame_equal(unstacked, expected) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + def test_stack(self, multiindex_year_month_day_dataframe_random_data, future_stack): + ymd = multiindex_year_month_day_dataframe_random_data + + # regular roundtrip + unstacked = ymd.unstack() + restacked = unstacked.stack(future_stack=future_stack) + if future_stack: + # NA values in unstacked persist to restacked in version 3 + restacked = restacked.dropna(how="all") + tm.assert_frame_equal(restacked, ymd) + + unlexsorted = ymd.sort_index(level=2) + + unstacked = unlexsorted.unstack(2) + restacked = unstacked.stack(future_stack=future_stack) + if future_stack: + # NA values in unstacked persist to restacked in version 3 + restacked = restacked.dropna(how="all") + tm.assert_frame_equal(restacked.sort_index(level=0), ymd) + + unlexsorted = unlexsorted[::-1] + unstacked = unlexsorted.unstack(1) + restacked = unstacked.stack(future_stack=future_stack).swaplevel(1, 2) + if future_stack: + # NA values in unstacked persist to restacked in version 3 + restacked = restacked.dropna(how="all") + tm.assert_frame_equal(restacked.sort_index(level=0), ymd) + + unlexsorted = unlexsorted.swaplevel(0, 1) + unstacked = unlexsorted.unstack(0).swaplevel(0, 1, axis=1) + restacked = unstacked.stack(0, future_stack=future_stack).swaplevel(1, 2) + if future_stack: + # NA values in unstacked persist to restacked in version 3 + restacked = restacked.dropna(how="all") + tm.assert_frame_equal(restacked.sort_index(level=0), ymd) + + # columns unsorted + unstacked = ymd.unstack() + restacked = unstacked.stack(future_stack=future_stack) + if future_stack: + # NA values in unstacked persist to restacked in version 3 + restacked = restacked.dropna(how="all") + tm.assert_frame_equal(restacked, ymd) + + # more than 2 levels in the columns + unstacked = ymd.unstack(1).unstack(1) + + result = unstacked.stack(1, future_stack=future_stack) + expected = ymd.unstack() + tm.assert_frame_equal(result, expected) + + result = unstacked.stack(2, future_stack=future_stack) + expected = ymd.unstack(1) + tm.assert_frame_equal(result, expected) + + result = unstacked.stack(0, future_stack=future_stack) + expected = ymd.stack(future_stack=future_stack).unstack(1).unstack(1) + tm.assert_frame_equal(result, expected) + + # not all levels present in each echelon + unstacked = ymd.unstack(2).loc[:, ::3] + stacked = unstacked.stack(future_stack=future_stack).stack( + future_stack=future_stack + ) + ymd_stacked = ymd.stack(future_stack=future_stack) + if future_stack: + # NA values in unstacked persist to restacked in version 3 + stacked = stacked.dropna(how="all") + ymd_stacked = ymd_stacked.dropna(how="all") + tm.assert_series_equal(stacked, ymd_stacked.reindex(stacked.index)) + + # stack with negative number + result = ymd.unstack(0).stack(-2, future_stack=future_stack) + expected = ymd.unstack(0).stack(0, future_stack=future_stack) + tm.assert_equal(result, expected) + + @pytest.mark.parametrize( + "idx, columns, exp_idx", + [ + [ + list("abab"), + ["1st", "2nd", "1st"], + MultiIndex( + levels=[["a", "b"], ["1st", "2nd"]], + codes=[np.tile(np.arange(2).repeat(3), 2), np.tile([0, 1, 0], 4)], + ), + ], + [ + MultiIndex.from_tuples((("a", 2), ("b", 1), ("a", 1), ("b", 2))), + ["1st", "2nd", "1st"], + MultiIndex( + levels=[["a", "b"], [1, 2], ["1st", "2nd"]], + codes=[ + np.tile(np.arange(2).repeat(3), 2), + np.repeat([1, 0, 1], [3, 6, 3]), + np.tile([0, 1, 0], 4), + ], + ), + ], + ], + ) + def test_stack_duplicate_index(self, idx, columns, exp_idx, future_stack): + # GH10417 + df = DataFrame( + np.arange(12).reshape(4, 3), + index=idx, + columns=columns, + ) + if future_stack: + msg = "Columns with duplicate values are not supported in stack" + with pytest.raises(ValueError, match=msg): + df.stack(future_stack=future_stack) + else: + result = df.stack(future_stack=future_stack) + expected = Series(np.arange(12), index=exp_idx) + tm.assert_series_equal(result, expected) + assert result.index.is_unique is False + li, ri = result.index, expected.index + tm.assert_index_equal(li, ri) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + def test_unstack_odd_failure(self, future_stack): + mi = MultiIndex.from_arrays( + [ + ["Fri"] * 4 + ["Sat"] * 2 + ["Sun"] * 2 + ["Thu"] * 3, + ["Dinner"] * 2 + ["Lunch"] * 2 + ["Dinner"] * 5 + ["Lunch"] * 2, + ["No", "Yes"] * 4 + ["No", "No", "Yes"], + ], + names=["day", "time", "smoker"], + ) + df = DataFrame( + { + "sum": np.arange(11, dtype="float64"), + "len": np.arange(11, dtype="float64"), + }, + index=mi, + ) + # it works, #2100 + result = df.unstack(2) + + recons = result.stack(future_stack=future_stack) + if future_stack: + # NA values in unstacked persist to restacked in version 3 + recons = recons.dropna(how="all") + tm.assert_frame_equal(recons, df) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + def test_stack_mixed_dtype(self, multiindex_dataframe_random_data, future_stack): + frame = multiindex_dataframe_random_data + + df = frame.T + df["foo", "four"] = "foo" + df = df.sort_index(level=1, axis=1) + + stacked = df.stack(future_stack=future_stack) + result = df["foo"].stack(future_stack=future_stack).sort_index() + tm.assert_series_equal(stacked["foo"], result, check_names=False) + assert result.name is None + assert stacked["bar"].dtype == np.float64 + + def test_unstack_bug(self, future_stack): + df = DataFrame( + { + "state": ["naive", "naive", "naive", "active", "active", "active"], + "exp": ["a", "b", "b", "b", "a", "a"], + "barcode": [1, 2, 3, 4, 1, 3], + "v": ["hi", "hi", "bye", "bye", "bye", "peace"], + "extra": np.arange(6.0), + } + ) + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby(["state", "exp", "barcode", "v"]).apply(len) + + unstacked = result.unstack() + restacked = unstacked.stack(future_stack=future_stack) + tm.assert_series_equal(restacked, result.reindex(restacked.index).astype(float)) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + def test_stack_unstack_preserve_names( + self, multiindex_dataframe_random_data, future_stack + ): + frame = multiindex_dataframe_random_data + + unstacked = frame.unstack() + assert unstacked.index.name == "first" + assert unstacked.columns.names == ["exp", "second"] + + restacked = unstacked.stack(future_stack=future_stack) + assert restacked.index.names == frame.index.names + + @pytest.mark.parametrize("method", ["stack", "unstack"]) + def test_stack_unstack_wrong_level_name( + self, method, multiindex_dataframe_random_data, future_stack + ): + # GH 18303 - wrong level name should raise + frame = multiindex_dataframe_random_data + + # A DataFrame with flat axes: + df = frame.loc["foo"] + + kwargs = {"future_stack": future_stack} if method == "stack" else {} + with pytest.raises(KeyError, match="does not match index name"): + getattr(df, method)("mistake", **kwargs) + + if method == "unstack": + # Same on a Series: + s = df.iloc[:, 0] + with pytest.raises(KeyError, match="does not match index name"): + getattr(s, method)("mistake", **kwargs) + + def test_unstack_level_name(self, multiindex_dataframe_random_data): + frame = multiindex_dataframe_random_data + + result = frame.unstack("second") + expected = frame.unstack(level=1) + tm.assert_frame_equal(result, expected) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + def test_stack_level_name(self, multiindex_dataframe_random_data, future_stack): + frame = multiindex_dataframe_random_data + + unstacked = frame.unstack("second") + result = unstacked.stack("exp", future_stack=future_stack) + expected = frame.unstack().stack(0, future_stack=future_stack) + tm.assert_frame_equal(result, expected) + + result = frame.stack("exp", future_stack=future_stack) + expected = frame.stack(future_stack=future_stack) + tm.assert_series_equal(result, expected) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + def test_stack_unstack_multiple( + self, multiindex_year_month_day_dataframe_random_data, future_stack + ): + ymd = multiindex_year_month_day_dataframe_random_data + + unstacked = ymd.unstack(["year", "month"]) + expected = ymd.unstack("year").unstack("month") + tm.assert_frame_equal(unstacked, expected) + assert unstacked.columns.names == expected.columns.names + + # series + s = ymd["A"] + s_unstacked = s.unstack(["year", "month"]) + tm.assert_frame_equal(s_unstacked, expected["A"]) + + restacked = unstacked.stack(["year", "month"], future_stack=future_stack) + if future_stack: + # NA values in unstacked persist to restacked in version 3 + restacked = restacked.dropna(how="all") + restacked = restacked.swaplevel(0, 1).swaplevel(1, 2) + restacked = restacked.sort_index(level=0) + + tm.assert_frame_equal(restacked, ymd) + assert restacked.index.names == ymd.index.names + + # GH #451 + unstacked = ymd.unstack([1, 2]) + expected = ymd.unstack(1).unstack(1).dropna(axis=1, how="all") + tm.assert_frame_equal(unstacked, expected) + + unstacked = ymd.unstack([2, 1]) + expected = ymd.unstack(2).unstack(1).dropna(axis=1, how="all") + tm.assert_frame_equal(unstacked, expected.loc[:, unstacked.columns]) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + def test_stack_names_and_numbers( + self, multiindex_year_month_day_dataframe_random_data, future_stack + ): + ymd = multiindex_year_month_day_dataframe_random_data + + unstacked = ymd.unstack(["year", "month"]) + + # Can't use mixture of names and numbers to stack + with pytest.raises(ValueError, match="level should contain"): + unstacked.stack([0, "month"], future_stack=future_stack) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + def test_stack_multiple_out_of_bounds( + self, multiindex_year_month_day_dataframe_random_data, future_stack + ): + # nlevels == 3 + ymd = multiindex_year_month_day_dataframe_random_data + + unstacked = ymd.unstack(["year", "month"]) + + with pytest.raises(IndexError, match="Too many levels"): + unstacked.stack([2, 3], future_stack=future_stack) + with pytest.raises(IndexError, match="not a valid level number"): + unstacked.stack([-4, -3], future_stack=future_stack) + + def test_unstack_period_series(self): + # GH4342 + idx1 = pd.PeriodIndex( + ["2013-01", "2013-01", "2013-02", "2013-02", "2013-03", "2013-03"], + freq="M", + name="period", + ) + idx2 = Index(["A", "B"] * 3, name="str") + value = [1, 2, 3, 4, 5, 6] + + idx = MultiIndex.from_arrays([idx1, idx2]) + s = Series(value, index=idx) + + result1 = s.unstack() + result2 = s.unstack(level=1) + result3 = s.unstack(level=0) + + e_idx = pd.PeriodIndex( + ["2013-01", "2013-02", "2013-03"], freq="M", name="period" + ) + expected = DataFrame( + {"A": [1, 3, 5], "B": [2, 4, 6]}, index=e_idx, columns=["A", "B"] + ) + expected.columns.name = "str" + + tm.assert_frame_equal(result1, expected) + tm.assert_frame_equal(result2, expected) + tm.assert_frame_equal(result3, expected.T) + + idx1 = pd.PeriodIndex( + ["2013-01", "2013-01", "2013-02", "2013-02", "2013-03", "2013-03"], + freq="M", + name="period1", + ) + + idx2 = pd.PeriodIndex( + ["2013-12", "2013-11", "2013-10", "2013-09", "2013-08", "2013-07"], + freq="M", + name="period2", + ) + idx = MultiIndex.from_arrays([idx1, idx2]) + s = Series(value, index=idx) + + result1 = s.unstack() + result2 = s.unstack(level=1) + result3 = s.unstack(level=0) + + e_idx = pd.PeriodIndex( + ["2013-01", "2013-02", "2013-03"], freq="M", name="period1" + ) + e_cols = pd.PeriodIndex( + ["2013-07", "2013-08", "2013-09", "2013-10", "2013-11", "2013-12"], + freq="M", + name="period2", + ) + expected = DataFrame( + [ + [np.nan, np.nan, np.nan, np.nan, 2, 1], + [np.nan, np.nan, 4, 3, np.nan, np.nan], + [6, 5, np.nan, np.nan, np.nan, np.nan], + ], + index=e_idx, + columns=e_cols, + ) + + tm.assert_frame_equal(result1, expected) + tm.assert_frame_equal(result2, expected) + tm.assert_frame_equal(result3, expected.T) + + def test_unstack_period_frame(self): + # GH4342 + idx1 = pd.PeriodIndex( + ["2014-01", "2014-02", "2014-02", "2014-02", "2014-01", "2014-01"], + freq="M", + name="period1", + ) + idx2 = pd.PeriodIndex( + ["2013-12", "2013-12", "2014-02", "2013-10", "2013-10", "2014-02"], + freq="M", + name="period2", + ) + value = {"A": [1, 2, 3, 4, 5, 6], "B": [6, 5, 4, 3, 2, 1]} + idx = MultiIndex.from_arrays([idx1, idx2]) + df = DataFrame(value, index=idx) + + result1 = df.unstack() + result2 = df.unstack(level=1) + result3 = df.unstack(level=0) + + e_1 = pd.PeriodIndex(["2014-01", "2014-02"], freq="M", name="period1") + e_2 = pd.PeriodIndex( + ["2013-10", "2013-12", "2014-02", "2013-10", "2013-12", "2014-02"], + freq="M", + name="period2", + ) + e_cols = MultiIndex.from_arrays(["A A A B B B".split(), e_2]) + expected = DataFrame( + [[5, 1, 6, 2, 6, 1], [4, 2, 3, 3, 5, 4]], index=e_1, columns=e_cols + ) + + tm.assert_frame_equal(result1, expected) + tm.assert_frame_equal(result2, expected) + + e_1 = pd.PeriodIndex( + ["2014-01", "2014-02", "2014-01", "2014-02"], freq="M", name="period1" + ) + e_2 = pd.PeriodIndex( + ["2013-10", "2013-12", "2014-02"], freq="M", name="period2" + ) + e_cols = MultiIndex.from_arrays(["A A B B".split(), e_1]) + expected = DataFrame( + [[5, 4, 2, 3], [1, 2, 6, 5], [6, 3, 1, 4]], index=e_2, columns=e_cols + ) + + tm.assert_frame_equal(result3, expected) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + def test_stack_multiple_bug(self, future_stack, using_infer_string): + # bug when some uniques are not present in the data GH#3170 + id_col = ([1] * 3) + ([2] * 3) + name = (["a"] * 3) + (["b"] * 3) + date = pd.to_datetime(["2013-01-03", "2013-01-04", "2013-01-05"] * 2) + var1 = np.random.default_rng(2).integers(0, 100, 6) + df = DataFrame({"ID": id_col, "NAME": name, "DATE": date, "VAR1": var1}) + + multi = df.set_index(["DATE", "ID"]) + multi.columns.name = "Params" + unst = multi.unstack("ID") + msg = re.escape("agg function failed [how->mean,dtype->") + if using_infer_string: + msg = "dtype 'str' does not support operation 'mean'" + with pytest.raises(TypeError, match=msg): + unst.resample("W-THU").mean() + down = unst.resample("W-THU").mean(numeric_only=True) + rs = down.stack("ID", future_stack=future_stack) + xp = ( + unst.loc[:, ["VAR1"]] + .resample("W-THU") + .mean() + .stack("ID", future_stack=future_stack) + ) + xp.columns.name = "Params" + tm.assert_frame_equal(rs, xp) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + def test_stack_dropna(self, future_stack): + # GH#3997 + df = DataFrame({"A": ["a1", "a2"], "B": ["b1", "b2"], "C": [1, 1]}) + df = df.set_index(["A", "B"]) + + dropna = False if not future_stack else lib.no_default + stacked = df.unstack().stack(dropna=dropna, future_stack=future_stack) + assert len(stacked) > len(stacked.dropna()) + + if future_stack: + with pytest.raises(ValueError, match="dropna must be unspecified"): + df.unstack().stack(dropna=True, future_stack=future_stack) + else: + stacked = df.unstack().stack(dropna=True, future_stack=future_stack) + tm.assert_frame_equal(stacked, stacked.dropna()) + + def test_unstack_multiple_hierarchical(self, future_stack): + df = DataFrame( + index=[ + [0, 0, 0, 0, 1, 1, 1, 1], + [0, 0, 1, 1, 0, 0, 1, 1], + [0, 1, 0, 1, 0, 1, 0, 1], + ], + columns=[[0, 0, 1, 1], [0, 1, 0, 1]], + ) + + df.index.names = ["a", "b", "c"] + df.columns.names = ["d", "e"] + + # it works! + df.unstack(["b", "c"]) + + def test_unstack_sparse_keyspace(self): + # memory problems with naive impl GH#2278 + # Generate Long File & Test Pivot + NUM_ROWS = 1000 + + df = DataFrame( + { + "A": np.random.default_rng(2).integers(100, size=NUM_ROWS), + "B": np.random.default_rng(3).integers(300, size=NUM_ROWS), + "C": np.random.default_rng(4).integers(-7, 7, size=NUM_ROWS), + "D": np.random.default_rng(5).integers(-19, 19, size=NUM_ROWS), + "E": np.random.default_rng(6).integers(3000, size=NUM_ROWS), + "F": np.random.default_rng(7).standard_normal(NUM_ROWS), + } + ) + + idf = df.set_index(["A", "B", "C", "D", "E"]) + + # it works! is sufficient + idf.unstack("E") + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + def test_unstack_unobserved_keys(self, future_stack): + # related to GH#2278 refactoring + levels = [[0, 1], [0, 1, 2, 3]] + codes = [[0, 0, 1, 1], [0, 2, 0, 2]] + + index = MultiIndex(levels, codes) + + df = DataFrame(np.random.default_rng(2).standard_normal((4, 2)), index=index) + + result = df.unstack() + assert len(result.columns) == 4 + + recons = result.stack(future_stack=future_stack) + tm.assert_frame_equal(recons, df) + + @pytest.mark.slow + def test_unstack_number_of_levels_larger_than_int32(self, monkeypatch): + # GH#20601 + # GH 26314: Change ValueError to PerformanceWarning + + class MockUnstacker(reshape_lib._Unstacker): + def __init__(self, *args, **kwargs) -> None: + # __init__ will raise the warning + super().__init__(*args, **kwargs) + raise Exception("Don't compute final result.") + + with monkeypatch.context() as m: + m.setattr(reshape_lib, "_Unstacker", MockUnstacker) + df = DataFrame( + np.zeros((2**16, 2)), + index=[np.arange(2**16), np.arange(2**16)], + ) + msg = "The following operation may generate" + with tm.assert_produces_warning(PerformanceWarning, match=msg): + with pytest.raises(Exception, match="Don't compute final result."): + df.unstack() + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + @pytest.mark.parametrize( + "levels", + itertools.chain.from_iterable( + itertools.product(itertools.permutations([0, 1, 2], width), repeat=2) + for width in [2, 3] + ), + ) + @pytest.mark.parametrize("stack_lev", range(2)) + @pytest.mark.parametrize("sort", [True, False]) + def test_stack_order_with_unsorted_levels( + self, levels, stack_lev, sort, future_stack + ): + # GH#16323 + # deep check for 1-row case + columns = MultiIndex(levels=levels, codes=[[0, 0, 1, 1], [0, 1, 0, 1]]) + df = DataFrame(columns=columns, data=[range(4)]) + kwargs = {} if future_stack else {"sort": sort} + df_stacked = df.stack(stack_lev, future_stack=future_stack, **kwargs) + for row in df.index: + for col in df.columns: + expected = df.loc[row, col] + result_row = row, col[stack_lev] + result_col = col[1 - stack_lev] + result = df_stacked.loc[result_row, result_col] + assert result == expected + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + def test_stack_order_with_unsorted_levels_multi_row(self, future_stack): + # GH#16323 + + # check multi-row case + mi = MultiIndex( + levels=[["A", "C", "B"], ["B", "A", "C"]], + codes=[np.repeat(range(3), 3), np.tile(range(3), 3)], + ) + df = DataFrame( + columns=mi, index=range(5), data=np.arange(5 * len(mi)).reshape(5, -1) + ) + assert all( + df.loc[row, col] + == df.stack(0, future_stack=future_stack).loc[(row, col[0]), col[1]] + for row in df.index + for col in df.columns + ) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + def test_stack_order_with_unsorted_levels_multi_row_2(self, future_stack): + # GH#53636 + levels = ((0, 1), (1, 0)) + stack_lev = 1 + columns = MultiIndex(levels=levels, codes=[[0, 0, 1, 1], [0, 1, 0, 1]]) + df = DataFrame(columns=columns, data=[range(4)], index=[1, 0, 2, 3]) + kwargs = {} if future_stack else {"sort": True} + result = df.stack(stack_lev, future_stack=future_stack, **kwargs) + expected_index = MultiIndex( + levels=[[0, 1, 2, 3], [0, 1]], + codes=[[1, 1, 0, 0, 2, 2, 3, 3], [1, 0, 1, 0, 1, 0, 1, 0]], + ) + expected = DataFrame( + { + 0: [0, 1, 0, 1, 0, 1, 0, 1], + 1: [2, 3, 2, 3, 2, 3, 2, 3], + }, + index=expected_index, + ) + tm.assert_frame_equal(result, expected) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + def test_stack_unstack_unordered_multiindex(self, future_stack): + # GH# 18265 + values = np.arange(5) + data = np.vstack( + [ + [f"b{x}" for x in values], # b0, b1, .. + [f"a{x}" for x in values], # a0, a1, .. + ] + ) + df = DataFrame(data.T, columns=["b", "a"]) + df.columns.name = "first" + second_level_dict = {"x": df} + multi_level_df = pd.concat(second_level_dict, axis=1) + multi_level_df.columns.names = ["second", "first"] + df = multi_level_df.reindex(sorted(multi_level_df.columns), axis=1) + result = df.stack(["first", "second"], future_stack=future_stack).unstack( + ["first", "second"] + ) + expected = DataFrame( + [["a0", "b0"], ["a1", "b1"], ["a2", "b2"], ["a3", "b3"], ["a4", "b4"]], + index=[0, 1, 2, 3, 4], + columns=MultiIndex.from_tuples( + [("a", "x"), ("b", "x")], names=["first", "second"] + ), + ) + tm.assert_frame_equal(result, expected) + + def test_unstack_preserve_types( + self, multiindex_year_month_day_dataframe_random_data, using_infer_string + ): + # GH#403 + ymd = multiindex_year_month_day_dataframe_random_data + ymd["E"] = "foo" + ymd["F"] = 2 + + unstacked = ymd.unstack("month") + assert unstacked["A", 1].dtype == np.float64 + assert ( + unstacked["E", 1].dtype == np.object_ + if not using_infer_string + else "string" + ) + assert unstacked["F", 1].dtype == np.float64 + + def test_unstack_group_index_overflow(self, future_stack): + codes = np.tile(np.arange(500), 2) + level = np.arange(500) + + index = MultiIndex( + levels=[level] * 8 + [[0, 1]], + codes=[codes] * 8 + [np.arange(2).repeat(500)], + ) + + s = Series(np.arange(1000), index=index) + result = s.unstack() + assert result.shape == (500, 2) + + # test roundtrip + stacked = result.stack(future_stack=future_stack) + tm.assert_series_equal(s, stacked.reindex(s.index)) + + # put it at beginning + index = MultiIndex( + levels=[[0, 1]] + [level] * 8, + codes=[np.arange(2).repeat(500)] + [codes] * 8, + ) + + s = Series(np.arange(1000), index=index) + result = s.unstack(0) + assert result.shape == (500, 2) + + # put it in middle + index = MultiIndex( + levels=[level] * 4 + [[0, 1]] + [level] * 4, + codes=([codes] * 4 + [np.arange(2).repeat(500)] + [codes] * 4), + ) + + s = Series(np.arange(1000), index=index) + result = s.unstack(4) + assert result.shape == (500, 2) + + def test_unstack_with_missing_int_cast_to_float(self, using_array_manager): + # https://github.com/pandas-dev/pandas/issues/37115 + df = DataFrame( + { + "a": ["A", "A", "B"], + "b": ["ca", "cb", "cb"], + "v": [10] * 3, + } + ).set_index(["a", "b"]) + + # add another int column to get 2 blocks + df["is_"] = 1 + if not using_array_manager: + assert len(df._mgr.blocks) == 2 + + result = df.unstack("b") + result[("is_", "ca")] = result[("is_", "ca")].fillna(0) + + expected = DataFrame( + [[10.0, 10.0, 1.0, 1.0], [np.nan, 10.0, 0.0, 1.0]], + index=Index(["A", "B"], name="a"), + columns=MultiIndex.from_tuples( + [("v", "ca"), ("v", "cb"), ("is_", "ca"), ("is_", "cb")], + names=[None, "b"], + ), + ) + if using_array_manager: + # INFO(ArrayManager) with ArrayManager preserve dtype where possible + expected[("v", "cb")] = expected[("v", "cb")].astype("int64") + expected[("is_", "cb")] = expected[("is_", "cb")].astype("int64") + tm.assert_frame_equal(result, expected) + + def test_unstack_with_level_has_nan(self): + # GH 37510 + df1 = DataFrame( + { + "L1": [1, 2, 3, 4], + "L2": [3, 4, 1, 2], + "L3": [1, 1, 1, 1], + "x": [1, 2, 3, 4], + } + ) + df1 = df1.set_index(["L1", "L2", "L3"]) + new_levels = ["n1", "n2", "n3", None] + df1.index = df1.index.set_levels(levels=new_levels, level="L1") + df1.index = df1.index.set_levels(levels=new_levels, level="L2") + + result = df1.unstack("L3")[("x", 1)].sort_index().index + expected = MultiIndex( + levels=[["n1", "n2", "n3", None], ["n1", "n2", "n3", None]], + codes=[[0, 1, 2, 3], [2, 3, 0, 1]], + names=["L1", "L2"], + ) + + tm.assert_index_equal(result, expected) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + def test_stack_nan_in_multiindex_columns(self, future_stack): + # GH#39481 + df = DataFrame( + np.zeros([1, 5]), + columns=MultiIndex.from_tuples( + [ + (0, None, None), + (0, 2, 0), + (0, 2, 1), + (0, 3, 0), + (0, 3, 1), + ], + ), + ) + result = df.stack(2, future_stack=future_stack) + if future_stack: + index = MultiIndex(levels=[[0], [0.0, 1.0]], codes=[[0, 0, 0], [-1, 0, 1]]) + columns = MultiIndex(levels=[[0], [2, 3]], codes=[[0, 0, 0], [-1, 0, 1]]) + else: + index = Index([(0, None), (0, 0), (0, 1)]) + columns = Index([(0, None), (0, 2), (0, 3)]) + expected = DataFrame( + [[0.0, np.nan, np.nan], [np.nan, 0.0, 0.0], [np.nan, 0.0, 0.0]], + index=index, + columns=columns, + ) + tm.assert_frame_equal(result, expected) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + def test_multi_level_stack_categorical(self, future_stack): + # GH 15239 + midx = MultiIndex.from_arrays( + [ + ["A"] * 2 + ["B"] * 2, + pd.Categorical(list("abab")), + pd.Categorical(list("ccdd")), + ] + ) + df = DataFrame(np.arange(8).reshape(2, 4), columns=midx) + result = df.stack([1, 2], future_stack=future_stack) + if future_stack: + expected = DataFrame( + [ + [0, np.nan], + [1, np.nan], + [np.nan, 2], + [np.nan, 3], + [4, np.nan], + [5, np.nan], + [np.nan, 6], + [np.nan, 7], + ], + columns=["A", "B"], + index=MultiIndex.from_arrays( + [ + [0] * 4 + [1] * 4, + pd.Categorical(list("abababab")), + pd.Categorical(list("ccddccdd")), + ] + ), + ) + else: + expected = DataFrame( + [ + [0, np.nan], + [np.nan, 2], + [1, np.nan], + [np.nan, 3], + [4, np.nan], + [np.nan, 6], + [5, np.nan], + [np.nan, 7], + ], + columns=["A", "B"], + index=MultiIndex.from_arrays( + [ + [0] * 4 + [1] * 4, + pd.Categorical(list("aabbaabb")), + pd.Categorical(list("cdcdcdcd")), + ] + ), + ) + tm.assert_frame_equal(result, expected) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + def test_stack_nan_level(self, future_stack): + # GH 9406 + df_nan = DataFrame( + np.arange(4).reshape(2, 2), + columns=MultiIndex.from_tuples( + [("A", np.nan), ("B", "b")], names=["Upper", "Lower"] + ), + index=Index([0, 1], name="Num"), + dtype=np.float64, + ) + result = df_nan.stack(future_stack=future_stack) + if future_stack: + index = MultiIndex( + levels=[[0, 1], [np.nan, "b"]], + codes=[[0, 0, 1, 1], [0, 1, 0, 1]], + names=["Num", "Lower"], + ) + else: + index = MultiIndex.from_tuples( + [(0, np.nan), (0, "b"), (1, np.nan), (1, "b")], names=["Num", "Lower"] + ) + expected = DataFrame( + [[0.0, np.nan], [np.nan, 1], [2.0, np.nan], [np.nan, 3.0]], + columns=Index(["A", "B"], name="Upper"), + index=index, + ) + tm.assert_frame_equal(result, expected) + + def test_unstack_categorical_columns(self): + # GH 14018 + idx = MultiIndex.from_product([["A"], [0, 1]]) + df = DataFrame({"cat": pd.Categorical(["a", "b"])}, index=idx) + result = df.unstack() + expected = DataFrame( + { + 0: pd.Categorical(["a"], categories=["a", "b"]), + 1: pd.Categorical(["b"], categories=["a", "b"]), + }, + index=["A"], + ) + expected.columns = MultiIndex.from_tuples([("cat", 0), ("cat", 1)]) + tm.assert_frame_equal(result, expected) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + def test_stack_unsorted(self, future_stack): + # GH 16925 + PAE = ["ITA", "FRA"] + VAR = ["A1", "A2"] + TYP = ["CRT", "DBT", "NET"] + MI = MultiIndex.from_product([PAE, VAR, TYP], names=["PAE", "VAR", "TYP"]) + + V = list(range(len(MI))) + DF = DataFrame(data=V, index=MI, columns=["VALUE"]) + + DF = DF.unstack(["VAR", "TYP"]) + DF.columns = DF.columns.droplevel(0) + DF.loc[:, ("A0", "NET")] = 9999 + + result = DF.stack(["VAR", "TYP"], future_stack=future_stack).sort_index() + expected = ( + DF.sort_index(axis=1) + .stack(["VAR", "TYP"], future_stack=future_stack) + .sort_index() + ) + tm.assert_series_equal(result, expected) + + @pytest.mark.filterwarnings( + "ignore:The previous implementation of stack is deprecated" + ) + def test_stack_nullable_dtype(self, future_stack): + # GH#43561 + columns = MultiIndex.from_product( + [["54511", "54515"], ["r", "t_mean"]], names=["station", "element"] + ) + index = Index([1, 2, 3], name="time") + + arr = np.array([[50, 226, 10, 215], [10, 215, 9, 220], [305, 232, 111, 220]]) + df = DataFrame(arr, columns=columns, index=index, dtype=pd.Int64Dtype()) + + result = df.stack("station", future_stack=future_stack) + + expected = ( + df.astype(np.int64) + .stack("station", future_stack=future_stack) + .astype(pd.Int64Dtype()) + ) + tm.assert_frame_equal(result, expected) + + # non-homogeneous case + df[df.columns[0]] = df[df.columns[0]].astype(pd.Float64Dtype()) + result = df.stack("station", future_stack=future_stack) + + expected = DataFrame( + { + "r": pd.array( + [50.0, 10.0, 10.0, 9.0, 305.0, 111.0], dtype=pd.Float64Dtype() + ), + "t_mean": pd.array( + [226, 215, 215, 220, 232, 220], dtype=pd.Int64Dtype() + ), + }, + index=MultiIndex.from_product([index, columns.levels[0]]), + ) + expected.columns.name = "element" + tm.assert_frame_equal(result, expected) + + def test_unstack_mixed_level_names(self): + # GH#48763 + arrays = [["a", "a"], [1, 2], ["red", "blue"]] + idx = MultiIndex.from_arrays(arrays, names=("x", 0, "y")) + df = DataFrame({"m": [1, 2]}, index=idx) + result = df.unstack("x") + expected = DataFrame( + [[1], [2]], + columns=MultiIndex.from_tuples([("m", "a")], names=[None, "x"]), + index=MultiIndex.from_tuples([(1, "red"), (2, "blue")], names=[0, "y"]), + ) + tm.assert_frame_equal(result, expected) + + +def test_stack_tuple_columns(future_stack): + # GH#54948 - test stack when the input has a non-MultiIndex with tuples + df = DataFrame( + [[1, 2, 3], [4, 5, 6], [7, 8, 9]], columns=[("a", 1), ("a", 2), ("b", 1)] + ) + result = df.stack(future_stack=future_stack) + expected = Series( + [1, 2, 3, 4, 5, 6, 7, 8, 9], + index=MultiIndex( + levels=[[0, 1, 2], [("a", 1), ("a", 2), ("b", 1)]], + codes=[[0, 0, 0, 1, 1, 1, 2, 2, 2], [0, 1, 2, 0, 1, 2, 0, 1, 2]], + ), + ) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "dtype, na_value", + [ + ("float64", np.nan), + ("Float64", np.nan), + ("Float64", pd.NA), + ("Int64", pd.NA), + ], +) +@pytest.mark.parametrize("test_multiindex", [True, False]) +def test_stack_preserves_na(dtype, na_value, test_multiindex): + # GH#56573 + if test_multiindex: + index = MultiIndex.from_arrays(2 * [Index([na_value], dtype=dtype)]) + else: + index = Index([na_value], dtype=dtype) + df = DataFrame({"a": [1]}, index=index) + result = df.stack(future_stack=True) + + if test_multiindex: + expected_index = MultiIndex.from_arrays( + [ + Index([na_value], dtype=dtype), + Index([na_value], dtype=dtype), + Index(["a"]), + ] + ) + else: + expected_index = MultiIndex.from_arrays( + [ + Index([na_value], dtype=dtype), + Index(["a"]), + ] + ) + expected = Series(1, index=expected_index) + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_subclass.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_subclass.py new file mode 100644 index 0000000000000000000000000000000000000000..39a29406c6e9a0d2e7b3b188314f51d2d721d5b5 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_subclass.py @@ -0,0 +1,832 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + DataFrame, + Index, + MultiIndex, + Series, +) +import pandas._testing as tm + +pytestmark = pytest.mark.filterwarnings( + "ignore:Passing a BlockManager|Passing a SingleBlockManager:DeprecationWarning" +) + + +@pytest.fixture() +def gpd_style_subclass_df(): + class SubclassedDataFrame(DataFrame): + @property + def _constructor(self): + return SubclassedDataFrame + + return SubclassedDataFrame({"a": [1, 2, 3]}) + + +class TestDataFrameSubclassing: + def test_no_warning_on_mgr(self): + # GH#57032 + df = tm.SubclassedDataFrame( + {"X": [1, 2, 3], "Y": [1, 2, 3]}, index=["a", "b", "c"] + ) + with tm.assert_produces_warning(None): + # df.isna() goes through _constructor_from_mgr, which we want to + # *not* pass a Manager do __init__ + df.isna() + df["X"].isna() + + def test_frame_subclassing_and_slicing(self): + # Subclass frame and ensure it returns the right class on slicing it + # In reference to PR 9632 + + class CustomSeries(Series): + @property + def _constructor(self): + return CustomSeries + + def custom_series_function(self): + return "OK" + + class CustomDataFrame(DataFrame): + """ + Subclasses pandas DF, fills DF with simulation results, adds some + custom plotting functions. + """ + + def __init__(self, *args, **kw) -> None: + super().__init__(*args, **kw) + + @property + def _constructor(self): + return CustomDataFrame + + _constructor_sliced = CustomSeries + + def custom_frame_function(self): + return "OK" + + data = {"col1": range(10), "col2": range(10)} + cdf = CustomDataFrame(data) + + # Did we get back our own DF class? + assert isinstance(cdf, CustomDataFrame) + + # Do we get back our own Series class after selecting a column? + cdf_series = cdf.col1 + assert isinstance(cdf_series, CustomSeries) + assert cdf_series.custom_series_function() == "OK" + + # Do we get back our own DF class after slicing row-wise? + cdf_rows = cdf[1:5] + assert isinstance(cdf_rows, CustomDataFrame) + assert cdf_rows.custom_frame_function() == "OK" + + # Make sure sliced part of multi-index frame is custom class + mcol = MultiIndex.from_tuples([("A", "A"), ("A", "B")]) + cdf_multi = CustomDataFrame([[0, 1], [2, 3]], columns=mcol) + assert isinstance(cdf_multi["A"], CustomDataFrame) + + mcol = MultiIndex.from_tuples([("A", ""), ("B", "")]) + cdf_multi2 = CustomDataFrame([[0, 1], [2, 3]], columns=mcol) + assert isinstance(cdf_multi2["A"], CustomSeries) + + def test_dataframe_metadata(self): + df = tm.SubclassedDataFrame( + {"X": [1, 2, 3], "Y": [1, 2, 3]}, index=["a", "b", "c"] + ) + df.testattr = "XXX" + + assert df.testattr == "XXX" + assert df[["X"]].testattr == "XXX" + assert df.loc[["a", "b"], :].testattr == "XXX" + assert df.iloc[[0, 1], :].testattr == "XXX" + + # see gh-9776 + assert df.iloc[0:1, :].testattr == "XXX" + + # see gh-10553 + unpickled = tm.round_trip_pickle(df) + tm.assert_frame_equal(df, unpickled) + assert df._metadata == unpickled._metadata + assert df.testattr == unpickled.testattr + + def test_indexing_sliced(self): + # GH 11559 + df = tm.SubclassedDataFrame( + {"X": [1, 2, 3], "Y": [4, 5, 6], "Z": [7, 8, 9]}, index=["a", "b", "c"] + ) + res = df.loc[:, "X"] + exp = tm.SubclassedSeries([1, 2, 3], index=list("abc"), name="X") + tm.assert_series_equal(res, exp) + assert isinstance(res, tm.SubclassedSeries) + + res = df.iloc[:, 1] + exp = tm.SubclassedSeries([4, 5, 6], index=list("abc"), name="Y") + tm.assert_series_equal(res, exp) + assert isinstance(res, tm.SubclassedSeries) + + res = df.loc[:, "Z"] + exp = tm.SubclassedSeries([7, 8, 9], index=list("abc"), name="Z") + tm.assert_series_equal(res, exp) + assert isinstance(res, tm.SubclassedSeries) + + res = df.loc["a", :] + exp = tm.SubclassedSeries([1, 4, 7], index=list("XYZ"), name="a") + tm.assert_series_equal(res, exp) + assert isinstance(res, tm.SubclassedSeries) + + res = df.iloc[1, :] + exp = tm.SubclassedSeries([2, 5, 8], index=list("XYZ"), name="b") + tm.assert_series_equal(res, exp) + assert isinstance(res, tm.SubclassedSeries) + + res = df.loc["c", :] + exp = tm.SubclassedSeries([3, 6, 9], index=list("XYZ"), name="c") + tm.assert_series_equal(res, exp) + assert isinstance(res, tm.SubclassedSeries) + + def test_subclass_attr_err_propagation(self): + # GH 11808 + class A(DataFrame): + @property + def nonexistence(self): + return self.i_dont_exist + + with pytest.raises(AttributeError, match=".*i_dont_exist.*"): + A().nonexistence + + def test_subclass_align(self): + # GH 12983 + df1 = tm.SubclassedDataFrame( + {"a": [1, 3, 5], "b": [1, 3, 5]}, index=list("ACE") + ) + df2 = tm.SubclassedDataFrame( + {"c": [1, 2, 4], "d": [1, 2, 4]}, index=list("ABD") + ) + + res1, res2 = df1.align(df2, axis=0) + exp1 = tm.SubclassedDataFrame( + {"a": [1, np.nan, 3, np.nan, 5], "b": [1, np.nan, 3, np.nan, 5]}, + index=list("ABCDE"), + ) + exp2 = tm.SubclassedDataFrame( + {"c": [1, 2, np.nan, 4, np.nan], "d": [1, 2, np.nan, 4, np.nan]}, + index=list("ABCDE"), + ) + assert isinstance(res1, tm.SubclassedDataFrame) + tm.assert_frame_equal(res1, exp1) + assert isinstance(res2, tm.SubclassedDataFrame) + tm.assert_frame_equal(res2, exp2) + + res1, res2 = df1.a.align(df2.c) + assert isinstance(res1, tm.SubclassedSeries) + tm.assert_series_equal(res1, exp1.a) + assert isinstance(res2, tm.SubclassedSeries) + tm.assert_series_equal(res2, exp2.c) + + def test_subclass_align_combinations(self): + # GH 12983 + df = tm.SubclassedDataFrame({"a": [1, 3, 5], "b": [1, 3, 5]}, index=list("ACE")) + s = tm.SubclassedSeries([1, 2, 4], index=list("ABD"), name="x") + + # frame + series + res1, res2 = df.align(s, axis=0) + exp1 = tm.SubclassedDataFrame( + {"a": [1, np.nan, 3, np.nan, 5], "b": [1, np.nan, 3, np.nan, 5]}, + index=list("ABCDE"), + ) + # name is lost when + exp2 = tm.SubclassedSeries( + [1, 2, np.nan, 4, np.nan], index=list("ABCDE"), name="x" + ) + + assert isinstance(res1, tm.SubclassedDataFrame) + tm.assert_frame_equal(res1, exp1) + assert isinstance(res2, tm.SubclassedSeries) + tm.assert_series_equal(res2, exp2) + + # series + frame + res1, res2 = s.align(df) + assert isinstance(res1, tm.SubclassedSeries) + tm.assert_series_equal(res1, exp2) + assert isinstance(res2, tm.SubclassedDataFrame) + tm.assert_frame_equal(res2, exp1) + + def test_subclass_iterrows(self): + # GH 13977 + df = tm.SubclassedDataFrame({"a": [1]}) + for i, row in df.iterrows(): + assert isinstance(row, tm.SubclassedSeries) + tm.assert_series_equal(row, df.loc[i]) + + def test_subclass_stack(self): + # GH 15564 + df = tm.SubclassedDataFrame( + [[1, 2, 3], [4, 5, 6], [7, 8, 9]], + index=["a", "b", "c"], + columns=["X", "Y", "Z"], + ) + + res = df.stack(future_stack=True) + exp = tm.SubclassedSeries( + [1, 2, 3, 4, 5, 6, 7, 8, 9], index=[list("aaabbbccc"), list("XYZXYZXYZ")] + ) + + tm.assert_series_equal(res, exp) + + def test_subclass_stack_multi(self): + # GH 15564 + df = tm.SubclassedDataFrame( + [[10, 11, 12, 13], [20, 21, 22, 23], [30, 31, 32, 33], [40, 41, 42, 43]], + index=MultiIndex.from_tuples( + list(zip(list("AABB"), list("cdcd"))), names=["aaa", "ccc"] + ), + columns=MultiIndex.from_tuples( + list(zip(list("WWXX"), list("yzyz"))), names=["www", "yyy"] + ), + ) + + exp = tm.SubclassedDataFrame( + [ + [10, 12], + [11, 13], + [20, 22], + [21, 23], + [30, 32], + [31, 33], + [40, 42], + [41, 43], + ], + index=MultiIndex.from_tuples( + list(zip(list("AAAABBBB"), list("ccddccdd"), list("yzyzyzyz"))), + names=["aaa", "ccc", "yyy"], + ), + columns=Index(["W", "X"], name="www"), + ) + + res = df.stack(future_stack=True) + tm.assert_frame_equal(res, exp) + + res = df.stack("yyy", future_stack=True) + tm.assert_frame_equal(res, exp) + + exp = tm.SubclassedDataFrame( + [ + [10, 11], + [12, 13], + [20, 21], + [22, 23], + [30, 31], + [32, 33], + [40, 41], + [42, 43], + ], + index=MultiIndex.from_tuples( + list(zip(list("AAAABBBB"), list("ccddccdd"), list("WXWXWXWX"))), + names=["aaa", "ccc", "www"], + ), + columns=Index(["y", "z"], name="yyy"), + ) + + res = df.stack("www", future_stack=True) + tm.assert_frame_equal(res, exp) + + def test_subclass_stack_multi_mixed(self): + # GH 15564 + df = tm.SubclassedDataFrame( + [ + [10, 11, 12.0, 13.0], + [20, 21, 22.0, 23.0], + [30, 31, 32.0, 33.0], + [40, 41, 42.0, 43.0], + ], + index=MultiIndex.from_tuples( + list(zip(list("AABB"), list("cdcd"))), names=["aaa", "ccc"] + ), + columns=MultiIndex.from_tuples( + list(zip(list("WWXX"), list("yzyz"))), names=["www", "yyy"] + ), + ) + + exp = tm.SubclassedDataFrame( + [ + [10, 12.0], + [11, 13.0], + [20, 22.0], + [21, 23.0], + [30, 32.0], + [31, 33.0], + [40, 42.0], + [41, 43.0], + ], + index=MultiIndex.from_tuples( + list(zip(list("AAAABBBB"), list("ccddccdd"), list("yzyzyzyz"))), + names=["aaa", "ccc", "yyy"], + ), + columns=Index(["W", "X"], name="www"), + ) + + res = df.stack(future_stack=True) + tm.assert_frame_equal(res, exp) + + res = df.stack("yyy", future_stack=True) + tm.assert_frame_equal(res, exp) + + exp = tm.SubclassedDataFrame( + [ + [10.0, 11.0], + [12.0, 13.0], + [20.0, 21.0], + [22.0, 23.0], + [30.0, 31.0], + [32.0, 33.0], + [40.0, 41.0], + [42.0, 43.0], + ], + index=MultiIndex.from_tuples( + list(zip(list("AAAABBBB"), list("ccddccdd"), list("WXWXWXWX"))), + names=["aaa", "ccc", "www"], + ), + columns=Index(["y", "z"], name="yyy"), + ) + + res = df.stack("www", future_stack=True) + tm.assert_frame_equal(res, exp) + + def test_subclass_unstack(self): + # GH 15564 + df = tm.SubclassedDataFrame( + [[1, 2, 3], [4, 5, 6], [7, 8, 9]], + index=["a", "b", "c"], + columns=["X", "Y", "Z"], + ) + + res = df.unstack() + exp = tm.SubclassedSeries( + [1, 4, 7, 2, 5, 8, 3, 6, 9], index=[list("XXXYYYZZZ"), list("abcabcabc")] + ) + + tm.assert_series_equal(res, exp) + + def test_subclass_unstack_multi(self): + # GH 15564 + df = tm.SubclassedDataFrame( + [[10, 11, 12, 13], [20, 21, 22, 23], [30, 31, 32, 33], [40, 41, 42, 43]], + index=MultiIndex.from_tuples( + list(zip(list("AABB"), list("cdcd"))), names=["aaa", "ccc"] + ), + columns=MultiIndex.from_tuples( + list(zip(list("WWXX"), list("yzyz"))), names=["www", "yyy"] + ), + ) + + exp = tm.SubclassedDataFrame( + [[10, 20, 11, 21, 12, 22, 13, 23], [30, 40, 31, 41, 32, 42, 33, 43]], + index=Index(["A", "B"], name="aaa"), + columns=MultiIndex.from_tuples( + list(zip(list("WWWWXXXX"), list("yyzzyyzz"), list("cdcdcdcd"))), + names=["www", "yyy", "ccc"], + ), + ) + + res = df.unstack() + tm.assert_frame_equal(res, exp) + + res = df.unstack("ccc") + tm.assert_frame_equal(res, exp) + + exp = tm.SubclassedDataFrame( + [[10, 30, 11, 31, 12, 32, 13, 33], [20, 40, 21, 41, 22, 42, 23, 43]], + index=Index(["c", "d"], name="ccc"), + columns=MultiIndex.from_tuples( + list(zip(list("WWWWXXXX"), list("yyzzyyzz"), list("ABABABAB"))), + names=["www", "yyy", "aaa"], + ), + ) + + res = df.unstack("aaa") + tm.assert_frame_equal(res, exp) + + def test_subclass_unstack_multi_mixed(self): + # GH 15564 + df = tm.SubclassedDataFrame( + [ + [10, 11, 12.0, 13.0], + [20, 21, 22.0, 23.0], + [30, 31, 32.0, 33.0], + [40, 41, 42.0, 43.0], + ], + index=MultiIndex.from_tuples( + list(zip(list("AABB"), list("cdcd"))), names=["aaa", "ccc"] + ), + columns=MultiIndex.from_tuples( + list(zip(list("WWXX"), list("yzyz"))), names=["www", "yyy"] + ), + ) + + exp = tm.SubclassedDataFrame( + [ + [10, 20, 11, 21, 12.0, 22.0, 13.0, 23.0], + [30, 40, 31, 41, 32.0, 42.0, 33.0, 43.0], + ], + index=Index(["A", "B"], name="aaa"), + columns=MultiIndex.from_tuples( + list(zip(list("WWWWXXXX"), list("yyzzyyzz"), list("cdcdcdcd"))), + names=["www", "yyy", "ccc"], + ), + ) + + res = df.unstack() + tm.assert_frame_equal(res, exp) + + res = df.unstack("ccc") + tm.assert_frame_equal(res, exp) + + exp = tm.SubclassedDataFrame( + [ + [10, 30, 11, 31, 12.0, 32.0, 13.0, 33.0], + [20, 40, 21, 41, 22.0, 42.0, 23.0, 43.0], + ], + index=Index(["c", "d"], name="ccc"), + columns=MultiIndex.from_tuples( + list(zip(list("WWWWXXXX"), list("yyzzyyzz"), list("ABABABAB"))), + names=["www", "yyy", "aaa"], + ), + ) + + res = df.unstack("aaa") + tm.assert_frame_equal(res, exp) + + def test_subclass_pivot(self): + # GH 15564 + df = tm.SubclassedDataFrame( + { + "index": ["A", "B", "C", "C", "B", "A"], + "columns": ["One", "One", "One", "Two", "Two", "Two"], + "values": [1.0, 2.0, 3.0, 3.0, 2.0, 1.0], + } + ) + + pivoted = df.pivot(index="index", columns="columns", values="values") + + expected = tm.SubclassedDataFrame( + { + "One": {"A": 1.0, "B": 2.0, "C": 3.0}, + "Two": {"A": 1.0, "B": 2.0, "C": 3.0}, + } + ) + + expected.index.name, expected.columns.name = "index", "columns" + + tm.assert_frame_equal(pivoted, expected) + + def test_subclassed_melt(self): + # GH 15564 + cheese = tm.SubclassedDataFrame( + { + "first": ["John", "Mary"], + "last": ["Doe", "Bo"], + "height": [5.5, 6.0], + "weight": [130, 150], + } + ) + + melted = pd.melt(cheese, id_vars=["first", "last"]) + + expected = tm.SubclassedDataFrame( + [ + ["John", "Doe", "height", 5.5], + ["Mary", "Bo", "height", 6.0], + ["John", "Doe", "weight", 130], + ["Mary", "Bo", "weight", 150], + ], + columns=["first", "last", "variable", "value"], + ) + + tm.assert_frame_equal(melted, expected) + + def test_subclassed_wide_to_long(self): + # GH 9762 + + x = np.random.default_rng(2).standard_normal(3) + df = tm.SubclassedDataFrame( + { + "A1970": {0: "a", 1: "b", 2: "c"}, + "A1980": {0: "d", 1: "e", 2: "f"}, + "B1970": {0: 2.5, 1: 1.2, 2: 0.7}, + "B1980": {0: 3.2, 1: 1.3, 2: 0.1}, + "X": dict(zip(range(3), x)), + } + ) + + df["id"] = df.index + exp_data = { + "X": x.tolist() + x.tolist(), + "A": ["a", "b", "c", "d", "e", "f"], + "B": [2.5, 1.2, 0.7, 3.2, 1.3, 0.1], + "year": [1970, 1970, 1970, 1980, 1980, 1980], + "id": [0, 1, 2, 0, 1, 2], + } + expected = tm.SubclassedDataFrame(exp_data) + expected = expected.set_index(["id", "year"])[["X", "A", "B"]] + long_frame = pd.wide_to_long(df, ["A", "B"], i="id", j="year") + + tm.assert_frame_equal(long_frame, expected) + + def test_subclassed_apply(self): + # GH 19822 + + def check_row_subclass(row): + assert isinstance(row, tm.SubclassedSeries) + + def stretch(row): + if row["variable"] == "height": + row["value"] += 0.5 + return row + + df = tm.SubclassedDataFrame( + [ + ["John", "Doe", "height", 5.5], + ["Mary", "Bo", "height", 6.0], + ["John", "Doe", "weight", 130], + ["Mary", "Bo", "weight", 150], + ], + columns=["first", "last", "variable", "value"], + ) + + df.apply(lambda x: check_row_subclass(x)) + df.apply(lambda x: check_row_subclass(x), axis=1) + + expected = tm.SubclassedDataFrame( + [ + ["John", "Doe", "height", 6.0], + ["Mary", "Bo", "height", 6.5], + ["John", "Doe", "weight", 130], + ["Mary", "Bo", "weight", 150], + ], + columns=["first", "last", "variable", "value"], + ) + + result = df.apply(lambda x: stretch(x), axis=1) + assert isinstance(result, tm.SubclassedDataFrame) + tm.assert_frame_equal(result, expected) + + expected = tm.SubclassedDataFrame([[1, 2, 3], [1, 2, 3], [1, 2, 3], [1, 2, 3]]) + + result = df.apply(lambda x: tm.SubclassedSeries([1, 2, 3]), axis=1) + assert isinstance(result, tm.SubclassedDataFrame) + tm.assert_frame_equal(result, expected) + + result = df.apply(lambda x: [1, 2, 3], axis=1, result_type="expand") + assert isinstance(result, tm.SubclassedDataFrame) + tm.assert_frame_equal(result, expected) + + expected = tm.SubclassedSeries([[1, 2, 3], [1, 2, 3], [1, 2, 3], [1, 2, 3]]) + + result = df.apply(lambda x: [1, 2, 3], axis=1) + assert not isinstance(result, tm.SubclassedDataFrame) + tm.assert_series_equal(result, expected) + + def test_subclassed_reductions(self, all_reductions): + # GH 25596 + + df = tm.SubclassedDataFrame({"A": [1, 2, 3], "B": [4, 5, 6], "C": [7, 8, 9]}) + result = getattr(df, all_reductions)() + assert isinstance(result, tm.SubclassedSeries) + + def test_subclassed_count(self): + df = tm.SubclassedDataFrame( + { + "Person": ["John", "Myla", "Lewis", "John", "Myla"], + "Age": [24.0, np.nan, 21.0, 33, 26], + "Single": [False, True, True, True, False], + } + ) + result = df.count() + assert isinstance(result, tm.SubclassedSeries) + + df = tm.SubclassedDataFrame({"A": [1, 0, 3], "B": [0, 5, 6], "C": [7, 8, 0]}) + result = df.count() + assert isinstance(result, tm.SubclassedSeries) + + df = tm.SubclassedDataFrame( + [[10, 11, 12, 13], [20, 21, 22, 23], [30, 31, 32, 33], [40, 41, 42, 43]], + index=MultiIndex.from_tuples( + list(zip(list("AABB"), list("cdcd"))), names=["aaa", "ccc"] + ), + columns=MultiIndex.from_tuples( + list(zip(list("WWXX"), list("yzyz"))), names=["www", "yyy"] + ), + ) + result = df.count() + assert isinstance(result, tm.SubclassedSeries) + + df = tm.SubclassedDataFrame() + result = df.count() + assert isinstance(result, tm.SubclassedSeries) + + def test_isin(self): + df = tm.SubclassedDataFrame( + {"num_legs": [2, 4], "num_wings": [2, 0]}, index=["falcon", "dog"] + ) + result = df.isin([0, 2]) + assert isinstance(result, tm.SubclassedDataFrame) + + def test_duplicated(self): + df = tm.SubclassedDataFrame({"A": [1, 2, 3], "B": [4, 5, 6], "C": [7, 8, 9]}) + result = df.duplicated() + assert isinstance(result, tm.SubclassedSeries) + + df = tm.SubclassedDataFrame() + result = df.duplicated() + assert isinstance(result, tm.SubclassedSeries) + + @pytest.mark.parametrize("idx_method", ["idxmax", "idxmin"]) + def test_idx(self, idx_method): + df = tm.SubclassedDataFrame({"A": [1, 2, 3], "B": [4, 5, 6], "C": [7, 8, 9]}) + result = getattr(df, idx_method)() + assert isinstance(result, tm.SubclassedSeries) + + def test_dot(self): + df = tm.SubclassedDataFrame([[0, 1, -2, -1], [1, 1, 1, 1]]) + s = tm.SubclassedSeries([1, 1, 2, 1]) + result = df.dot(s) + assert isinstance(result, tm.SubclassedSeries) + + df = tm.SubclassedDataFrame([[0, 1, -2, -1], [1, 1, 1, 1]]) + s = tm.SubclassedDataFrame([1, 1, 2, 1]) + result = df.dot(s) + assert isinstance(result, tm.SubclassedDataFrame) + + def test_memory_usage(self): + df = tm.SubclassedDataFrame({"A": [1, 2, 3], "B": [4, 5, 6], "C": [7, 8, 9]}) + result = df.memory_usage() + assert isinstance(result, tm.SubclassedSeries) + + result = df.memory_usage(index=False) + assert isinstance(result, tm.SubclassedSeries) + + def test_corrwith(self): + pytest.importorskip("scipy") + index = ["a", "b", "c", "d", "e"] + columns = ["one", "two", "three", "four"] + df1 = tm.SubclassedDataFrame( + np.random.default_rng(2).standard_normal((5, 4)), + index=index, + columns=columns, + ) + df2 = tm.SubclassedDataFrame( + np.random.default_rng(2).standard_normal((4, 4)), + index=index[:4], + columns=columns, + ) + correls = df1.corrwith(df2, axis=1, drop=True, method="kendall") + + assert isinstance(correls, (tm.SubclassedSeries)) + + def test_asof(self): + N = 3 + rng = pd.date_range("1/1/1990", periods=N, freq="53s") + df = tm.SubclassedDataFrame( + { + "A": [np.nan, np.nan, np.nan], + "B": [np.nan, np.nan, np.nan], + "C": [np.nan, np.nan, np.nan], + }, + index=rng, + ) + + result = df.asof(rng[-2:]) + assert isinstance(result, tm.SubclassedDataFrame) + + result = df.asof(rng[-2]) + assert isinstance(result, tm.SubclassedSeries) + + result = df.asof("1989-12-31") + assert isinstance(result, tm.SubclassedSeries) + + def test_idxmin_preserves_subclass(self): + # GH 28330 + + df = tm.SubclassedDataFrame({"A": [1, 2, 3], "B": [4, 5, 6], "C": [7, 8, 9]}) + result = df.idxmin() + assert isinstance(result, tm.SubclassedSeries) + + def test_idxmax_preserves_subclass(self): + # GH 28330 + + df = tm.SubclassedDataFrame({"A": [1, 2, 3], "B": [4, 5, 6], "C": [7, 8, 9]}) + result = df.idxmax() + assert isinstance(result, tm.SubclassedSeries) + + def test_convert_dtypes_preserves_subclass(self, gpd_style_subclass_df): + # GH 43668 + df = tm.SubclassedDataFrame({"A": [1, 2, 3], "B": [4, 5, 6], "C": [7, 8, 9]}) + result = df.convert_dtypes() + assert isinstance(result, tm.SubclassedDataFrame) + + result = gpd_style_subclass_df.convert_dtypes() + assert isinstance(result, type(gpd_style_subclass_df)) + + def test_astype_preserves_subclass(self): + # GH#40810 + df = tm.SubclassedDataFrame({"A": [1, 2, 3], "B": [4, 5, 6], "C": [7, 8, 9]}) + + result = df.astype({"A": np.int64, "B": np.int32, "C": np.float64}) + assert isinstance(result, tm.SubclassedDataFrame) + + def test_equals_subclass(self): + # https://github.com/pandas-dev/pandas/pull/34402 + # allow subclass in both directions + df1 = DataFrame({"a": [1, 2, 3]}) + df2 = tm.SubclassedDataFrame({"a": [1, 2, 3]}) + assert df1.equals(df2) + assert df2.equals(df1) + + def test_replace_list_method(self): + # https://github.com/pandas-dev/pandas/pull/46018 + df = tm.SubclassedDataFrame({"A": [0, 1, 2]}) + msg = "The 'method' keyword in SubclassedDataFrame.replace is deprecated" + with tm.assert_produces_warning( + FutureWarning, match=msg, raise_on_extra_warnings=False + ): + result = df.replace([1, 2], method="ffill") + expected = tm.SubclassedDataFrame({"A": [0, 0, 0]}) + assert isinstance(result, tm.SubclassedDataFrame) + tm.assert_frame_equal(result, expected) + + +class MySubclassWithMetadata(DataFrame): + _metadata = ["my_metadata"] + + def __init__(self, *args, **kwargs) -> None: + super().__init__(*args, **kwargs) + + my_metadata = kwargs.pop("my_metadata", None) + if args and isinstance(args[0], MySubclassWithMetadata): + my_metadata = args[0].my_metadata # type: ignore[has-type] + self.my_metadata = my_metadata + + @property + def _constructor(self): + return MySubclassWithMetadata + + +def test_constructor_with_metadata(): + # https://github.com/pandas-dev/pandas/pull/54922 + # https://github.com/pandas-dev/pandas/issues/55120 + df = MySubclassWithMetadata( + np.random.default_rng(2).random((5, 3)), columns=["A", "B", "C"] + ) + subset = df[["A", "B"]] + assert isinstance(subset, MySubclassWithMetadata) + + +def test_constructor_with_metadata_from_records(): + # GH#57008 + df = MySubclassWithMetadata.from_records([{"a": 1, "b": 2}]) + assert df.my_metadata is None + assert type(df) is MySubclassWithMetadata + + +class SimpleDataFrameSubClass(DataFrame): + """A subclass of DataFrame that does not define a constructor.""" + + +class SimpleSeriesSubClass(Series): + """A subclass of Series that does not define a constructor.""" + + +class TestSubclassWithoutConstructor: + def test_copy_df(self): + expected = DataFrame({"a": [1, 2, 3]}) + result = SimpleDataFrameSubClass(expected).copy() + + assert ( + type(result) is DataFrame + ) # assert_frame_equal only checks isinstance(lhs, type(rhs)) + tm.assert_frame_equal(result, expected) + + def test_copy_series(self): + expected = Series([1, 2, 3]) + result = SimpleSeriesSubClass(expected).copy() + + tm.assert_series_equal(result, expected) + + def test_series_to_frame(self): + orig = Series([1, 2, 3]) + expected = orig.to_frame() + result = SimpleSeriesSubClass(orig).to_frame() + + assert ( + type(result) is DataFrame + ) # assert_frame_equal only checks isinstance(lhs, type(rhs)) + tm.assert_frame_equal(result, expected) + + def test_groupby(self): + df = SimpleDataFrameSubClass(DataFrame({"a": [1, 2, 3]})) + + for _, v in df.groupby("a"): + assert type(v) is DataFrame diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_ufunc.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_ufunc.py new file mode 100644 index 0000000000000000000000000000000000000000..88c62da2b0a735b103f7a6b03634aa185fc46d2c --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_ufunc.py @@ -0,0 +1,311 @@ +from functools import partial +import re + +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm +from pandas.api.types import is_extension_array_dtype + +dtypes = [ + "int64", + "Int64", + {"A": "int64", "B": "Int64"}, +] + + +@pytest.mark.parametrize("dtype", dtypes) +def test_unary_unary(dtype): + # unary input, unary output + values = np.array([[-1, -1], [1, 1]], dtype="int64") + df = pd.DataFrame(values, columns=["A", "B"], index=["a", "b"]).astype(dtype=dtype) + result = np.positive(df) + expected = pd.DataFrame( + np.positive(values), index=df.index, columns=df.columns + ).astype(dtype) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("dtype", dtypes) +def test_unary_binary(request, dtype): + # unary input, binary output + if is_extension_array_dtype(dtype) or isinstance(dtype, dict): + request.applymarker( + pytest.mark.xfail( + reason="Extension / mixed with multiple outputs not implemented." + ) + ) + + values = np.array([[-1, -1], [1, 1]], dtype="int64") + df = pd.DataFrame(values, columns=["A", "B"], index=["a", "b"]).astype(dtype=dtype) + result_pandas = np.modf(df) + assert isinstance(result_pandas, tuple) + assert len(result_pandas) == 2 + expected_numpy = np.modf(values) + + for result, b in zip(result_pandas, expected_numpy): + expected = pd.DataFrame(b, index=df.index, columns=df.columns) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("dtype", dtypes) +def test_binary_input_dispatch_binop(dtype): + # binop ufuncs are dispatched to our dunder methods. + values = np.array([[-1, -1], [1, 1]], dtype="int64") + df = pd.DataFrame(values, columns=["A", "B"], index=["a", "b"]).astype(dtype=dtype) + result = np.add(df, df) + expected = pd.DataFrame( + np.add(values, values), index=df.index, columns=df.columns + ).astype(dtype) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "func,arg,expected", + [ + (np.add, 1, [2, 3, 4, 5]), + ( + partial(np.add, where=[[False, True], [True, False]]), + np.array([[1, 1], [1, 1]]), + [0, 3, 4, 0], + ), + (np.power, np.array([[1, 1], [2, 2]]), [1, 2, 9, 16]), + (np.subtract, 2, [-1, 0, 1, 2]), + ( + partial(np.negative, where=np.array([[False, True], [True, False]])), + None, + [0, -2, -3, 0], + ), + ], +) +def test_ufunc_passes_args(func, arg, expected): + # GH#40662 + arr = np.array([[1, 2], [3, 4]]) + df = pd.DataFrame(arr) + result_inplace = np.zeros_like(arr) + # 1-argument ufunc + if arg is None: + result = func(df, out=result_inplace) + else: + result = func(df, arg, out=result_inplace) + + expected = np.array(expected).reshape(2, 2) + tm.assert_numpy_array_equal(result_inplace, expected) + + expected = pd.DataFrame(expected) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("dtype_a", dtypes) +@pytest.mark.parametrize("dtype_b", dtypes) +def test_binary_input_aligns_columns(request, dtype_a, dtype_b): + if ( + is_extension_array_dtype(dtype_a) + or isinstance(dtype_a, dict) + or is_extension_array_dtype(dtype_b) + or isinstance(dtype_b, dict) + ): + request.applymarker( + pytest.mark.xfail( + reason="Extension / mixed with multiple inputs not implemented." + ) + ) + + df1 = pd.DataFrame({"A": [1, 2], "B": [3, 4]}).astype(dtype_a) + + if isinstance(dtype_a, dict) and isinstance(dtype_b, dict): + dtype_b = dtype_b.copy() + dtype_b["C"] = dtype_b.pop("B") + df2 = pd.DataFrame({"A": [1, 2], "C": [3, 4]}).astype(dtype_b) + # As of 2.0, align first before applying the ufunc + result = np.heaviside(df1, df2) + expected = np.heaviside( + np.array([[1, 3, np.nan], [2, 4, np.nan]]), + np.array([[1, np.nan, 3], [2, np.nan, 4]]), + ) + expected = pd.DataFrame(expected, index=[0, 1], columns=["A", "B", "C"]) + tm.assert_frame_equal(result, expected) + + result = np.heaviside(df1, df2.values) + expected = pd.DataFrame([[1.0, 1.0], [1.0, 1.0]], columns=["A", "B"]) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("dtype", dtypes) +def test_binary_input_aligns_index(request, dtype): + if is_extension_array_dtype(dtype) or isinstance(dtype, dict): + request.applymarker( + pytest.mark.xfail( + reason="Extension / mixed with multiple inputs not implemented." + ) + ) + df1 = pd.DataFrame({"A": [1, 2], "B": [3, 4]}, index=["a", "b"]).astype(dtype) + df2 = pd.DataFrame({"A": [1, 2], "B": [3, 4]}, index=["a", "c"]).astype(dtype) + result = np.heaviside(df1, df2) + expected = np.heaviside( + np.array([[1, 3], [3, 4], [np.nan, np.nan]]), + np.array([[1, 3], [np.nan, np.nan], [3, 4]]), + ) + # TODO(FloatArray): this will be Float64Dtype. + expected = pd.DataFrame(expected, index=["a", "b", "c"], columns=["A", "B"]) + tm.assert_frame_equal(result, expected) + + result = np.heaviside(df1, df2.values) + expected = pd.DataFrame( + [[1.0, 1.0], [1.0, 1.0]], columns=["A", "B"], index=["a", "b"] + ) + tm.assert_frame_equal(result, expected) + + +def test_binary_frame_series_raises(): + # We don't currently implement + df = pd.DataFrame({"A": [1, 2]}) + with pytest.raises(NotImplementedError, match="logaddexp"): + np.logaddexp(df, df["A"]) + + with pytest.raises(NotImplementedError, match="logaddexp"): + np.logaddexp(df["A"], df) + + +def test_unary_accumulate_axis(): + # https://github.com/pandas-dev/pandas/issues/39259 + df = pd.DataFrame({"a": [1, 3, 2, 4]}) + result = np.maximum.accumulate(df) + expected = pd.DataFrame({"a": [1, 3, 3, 4]}) + tm.assert_frame_equal(result, expected) + + df = pd.DataFrame({"a": [1, 3, 2, 4], "b": [0.1, 4.0, 3.0, 2.0]}) + result = np.maximum.accumulate(df) + # in theory could preserve int dtype for default axis=0 + expected = pd.DataFrame({"a": [1.0, 3.0, 3.0, 4.0], "b": [0.1, 4.0, 4.0, 4.0]}) + tm.assert_frame_equal(result, expected) + + result = np.maximum.accumulate(df, axis=0) + tm.assert_frame_equal(result, expected) + + result = np.maximum.accumulate(df, axis=1) + expected = pd.DataFrame({"a": [1.0, 3.0, 2.0, 4.0], "b": [1.0, 4.0, 3.0, 4.0]}) + tm.assert_frame_equal(result, expected) + + +def test_frame_outer_disallowed(): + df = pd.DataFrame({"A": [1, 2]}) + with pytest.raises(NotImplementedError, match=""): + # deprecation enforced in 2.0 + np.subtract.outer(df, df) + + +def test_alignment_deprecation_enforced(): + # Enforced in 2.0 + # https://github.com/pandas-dev/pandas/issues/39184 + df1 = pd.DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + df2 = pd.DataFrame({"b": [1, 2, 3], "c": [4, 5, 6]}) + s1 = pd.Series([1, 2], index=["a", "b"]) + s2 = pd.Series([1, 2], index=["b", "c"]) + + # binary dataframe / dataframe + expected = pd.DataFrame({"a": [2, 4, 6], "b": [8, 10, 12]}) + + with tm.assert_produces_warning(None): + # aligned -> no warning! + result = np.add(df1, df1) + tm.assert_frame_equal(result, expected) + + result = np.add(df1, df2.values) + tm.assert_frame_equal(result, expected) + + result = np.add(df1, df2) + expected = pd.DataFrame({"a": [np.nan] * 3, "b": [5, 7, 9], "c": [np.nan] * 3}) + tm.assert_frame_equal(result, expected) + + result = np.add(df1.values, df2) + expected = pd.DataFrame({"b": [2, 4, 6], "c": [8, 10, 12]}) + tm.assert_frame_equal(result, expected) + + # binary dataframe / series + expected = pd.DataFrame({"a": [2, 3, 4], "b": [6, 7, 8]}) + + with tm.assert_produces_warning(None): + # aligned -> no warning! + result = np.add(df1, s1) + tm.assert_frame_equal(result, expected) + + result = np.add(df1, s2.values) + tm.assert_frame_equal(result, expected) + + expected = pd.DataFrame( + {"a": [np.nan] * 3, "b": [5.0, 6.0, 7.0], "c": [np.nan] * 3} + ) + result = np.add(df1, s2) + tm.assert_frame_equal(result, expected) + + msg = "Cannot apply ufunc to mixed DataFrame and Series inputs." + with pytest.raises(NotImplementedError, match=msg): + np.add(s2, df1) + + +def test_alignment_deprecation_many_inputs_enforced(): + # Enforced in 2.0 + # https://github.com/pandas-dev/pandas/issues/39184 + # test that the deprecation also works with > 2 inputs -> using a numba + # written ufunc for this because numpy itself doesn't have such ufuncs + numba = pytest.importorskip("numba") + + @numba.vectorize([numba.float64(numba.float64, numba.float64, numba.float64)]) + def my_ufunc(x, y, z): + return x + y + z + + df1 = pd.DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + df2 = pd.DataFrame({"b": [1, 2, 3], "c": [4, 5, 6]}) + df3 = pd.DataFrame({"a": [1, 2, 3], "c": [4, 5, 6]}) + + result = my_ufunc(df1, df2, df3) + expected = pd.DataFrame(np.full((3, 3), np.nan), columns=["a", "b", "c"]) + tm.assert_frame_equal(result, expected) + + # all aligned -> no warning + with tm.assert_produces_warning(None): + result = my_ufunc(df1, df1, df1) + expected = pd.DataFrame([[3.0, 12.0], [6.0, 15.0], [9.0, 18.0]], columns=["a", "b"]) + tm.assert_frame_equal(result, expected) + + # mixed frame / arrays + msg = ( + r"operands could not be broadcast together with shapes \(3,3\) \(3,3\) \(3,2\)" + ) + with pytest.raises(ValueError, match=msg): + my_ufunc(df1, df2, df3.values) + + # single frame -> no warning + with tm.assert_produces_warning(None): + result = my_ufunc(df1, df2.values, df3.values) + tm.assert_frame_equal(result, expected) + + # takes indices of first frame + msg = ( + r"operands could not be broadcast together with shapes \(3,2\) \(3,3\) \(3,3\)" + ) + with pytest.raises(ValueError, match=msg): + my_ufunc(df1.values, df2, df3) + + +def test_array_ufuncs_for_many_arguments(): + # GH39853 + def add3(x, y, z): + return x + y + z + + ufunc = np.frompyfunc(add3, 3, 1) + df = pd.DataFrame([[1, 2], [3, 4]]) + + result = ufunc(df, df, 1) + expected = pd.DataFrame([[3, 5], [7, 9]], dtype=object) + tm.assert_frame_equal(result, expected) + + ser = pd.Series([1, 2]) + msg = ( + "Cannot apply ufunc " + "to mixed DataFrame and Series inputs." + ) + with pytest.raises(NotImplementedError, match=re.escape(msg)): + ufunc(df, df, ser) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_unary.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_unary.py new file mode 100644 index 0000000000000000000000000000000000000000..a48b5c51f9ca73495cfab4d9ace73b0cded221b4 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_unary.py @@ -0,0 +1,195 @@ +from decimal import Decimal + +import numpy as np +import pytest + +from pandas.compat.numpy import np_version_gte1p25 + +import pandas as pd +import pandas._testing as tm + + +class TestDataFrameUnaryOperators: + # __pos__, __neg__, __invert__ + + @pytest.mark.parametrize( + "df,expected", + [ + (pd.DataFrame({"a": [-1, 1]}), pd.DataFrame({"a": [1, -1]})), + (pd.DataFrame({"a": [False, True]}), pd.DataFrame({"a": [True, False]})), + ( + pd.DataFrame({"a": pd.Series(pd.to_timedelta([-1, 1]))}), + pd.DataFrame({"a": pd.Series(pd.to_timedelta([1, -1]))}), + ), + ], + ) + def test_neg_numeric(self, df, expected): + tm.assert_frame_equal(-df, expected) + tm.assert_series_equal(-df["a"], expected["a"]) + + @pytest.mark.parametrize( + "df, expected", + [ + (np.array([1, 2], dtype=object), np.array([-1, -2], dtype=object)), + ([Decimal("1.0"), Decimal("2.0")], [Decimal("-1.0"), Decimal("-2.0")]), + ], + ) + def test_neg_object(self, df, expected): + # GH#21380 + df = pd.DataFrame({"a": df}) + expected = pd.DataFrame({"a": expected}) + tm.assert_frame_equal(-df, expected) + tm.assert_series_equal(-df["a"], expected["a"]) + + @pytest.mark.parametrize( + "df", + [ + pd.DataFrame({"a": ["a", "b"]}), + pd.DataFrame({"a": pd.to_datetime(["2017-01-22", "1970-01-01"])}), + ], + ) + def test_neg_raises(self, df, using_infer_string): + msg = ( + "bad operand type for unary -: 'str'|" + r"bad operand type for unary -: 'DatetimeArray'|" + "unary '-' not supported for dtype" + ) + with pytest.raises(TypeError, match=msg): + (-df) + with pytest.raises(TypeError, match=msg): + (-df["a"]) + + def test_invert(self, float_frame): + df = float_frame + + tm.assert_frame_equal(-(df < 0), ~(df < 0)) + + def test_invert_mixed(self): + shape = (10, 5) + df = pd.concat( + [ + pd.DataFrame(np.zeros(shape, dtype="bool")), + pd.DataFrame(np.zeros(shape, dtype=int)), + ], + axis=1, + ignore_index=True, + ) + result = ~df + expected = pd.concat( + [ + pd.DataFrame(np.ones(shape, dtype="bool")), + pd.DataFrame(-np.ones(shape, dtype=int)), + ], + axis=1, + ignore_index=True, + ) + tm.assert_frame_equal(result, expected) + + def test_invert_empty_not_input(self): + # GH#51032 + df = pd.DataFrame() + result = ~df + tm.assert_frame_equal(df, result) + assert df is not result + + @pytest.mark.parametrize( + "df", + [ + pd.DataFrame({"a": [-1, 1]}), + pd.DataFrame({"a": [False, True]}), + pd.DataFrame({"a": pd.Series(pd.to_timedelta([-1, 1]))}), + ], + ) + def test_pos_numeric(self, df): + # GH#16073 + tm.assert_frame_equal(+df, df) + tm.assert_series_equal(+df["a"], df["a"]) + + @pytest.mark.parametrize( + "df", + [ + pd.DataFrame({"a": np.array([-1, 2], dtype=object)}), + pd.DataFrame({"a": [Decimal("-1.0"), Decimal("2.0")]}), + ], + ) + def test_pos_object(self, df): + # GH#21380 + tm.assert_frame_equal(+df, df) + tm.assert_series_equal(+df["a"], df["a"]) + + @pytest.mark.parametrize( + "df", + [ + pytest.param( + pd.DataFrame({"a": ["a", "b"]}), + # filterwarnings removable once min numpy version is 1.25 + marks=[ + pytest.mark.filterwarnings("ignore:Applying:DeprecationWarning") + ], + ), + ], + ) + def test_pos_object_raises(self, df): + # GH#21380 + if np_version_gte1p25: + with pytest.raises( + TypeError, match=r"^bad operand type for unary \+: \'str\'$" + ): + tm.assert_frame_equal(+df, df) + else: + tm.assert_series_equal(+df["a"], df["a"]) + + @pytest.mark.parametrize( + "df", [pd.DataFrame({"a": pd.to_datetime(["2017-01-22", "1970-01-01"])})] + ) + def test_pos_raises(self, df): + msg = r"bad operand type for unary \+: 'DatetimeArray'" + with pytest.raises(TypeError, match=msg): + (+df) + with pytest.raises(TypeError, match=msg): + (+df["a"]) + + def test_unary_nullable(self): + df = pd.DataFrame( + { + "a": pd.array([1, -2, 3, pd.NA], dtype="Int64"), + "b": pd.array([4.0, -5.0, 6.0, pd.NA], dtype="Float32"), + "c": pd.array([True, False, False, pd.NA], dtype="boolean"), + # include numpy bool to make sure bool-vs-boolean behavior + # is consistent in non-NA locations + "d": np.array([True, False, False, True]), + } + ) + + result = +df + res_ufunc = np.positive(df) + expected = df + # TODO: assert that we have copies? + tm.assert_frame_equal(result, expected) + tm.assert_frame_equal(res_ufunc, expected) + + result = -df + res_ufunc = np.negative(df) + expected = pd.DataFrame( + { + "a": pd.array([-1, 2, -3, pd.NA], dtype="Int64"), + "b": pd.array([-4.0, 5.0, -6.0, pd.NA], dtype="Float32"), + "c": pd.array([False, True, True, pd.NA], dtype="boolean"), + "d": np.array([False, True, True, False]), + } + ) + tm.assert_frame_equal(result, expected) + tm.assert_frame_equal(res_ufunc, expected) + + result = abs(df) + res_ufunc = np.abs(df) + expected = pd.DataFrame( + { + "a": pd.array([1, 2, 3, pd.NA], dtype="Int64"), + "b": pd.array([4.0, 5.0, 6.0, pd.NA], dtype="Float32"), + "c": pd.array([True, False, False, pd.NA], dtype="boolean"), + "d": np.array([True, False, False, True]), + } + ) + tm.assert_frame_equal(result, expected) + tm.assert_frame_equal(res_ufunc, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_validate.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_validate.py new file mode 100644 index 0000000000000000000000000000000000000000..e99e0a686384883d570feef949597d08da7e8ff9 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/frame/test_validate.py @@ -0,0 +1,41 @@ +import pytest + +from pandas.core.frame import DataFrame + + +@pytest.fixture +def dataframe(): + return DataFrame({"a": [1, 2], "b": [3, 4]}) + + +class TestDataFrameValidate: + """Tests for error handling related to data types of method arguments.""" + + @pytest.mark.parametrize( + "func", + [ + "query", + "eval", + "set_index", + "reset_index", + "dropna", + "drop_duplicates", + "sort_values", + ], + ) + @pytest.mark.parametrize("inplace", [1, "True", [1, 2, 3], 5.0]) + def test_validate_bool_args(self, dataframe, func, inplace): + msg = 'For argument "inplace" expected type bool' + kwargs = {"inplace": inplace} + + if func == "query": + kwargs["expr"] = "a > b" + elif func == "eval": + kwargs["expr"] = "a + b" + elif func == "set_index": + kwargs["keys"] = ["a"] + elif func == "sort_values": + kwargs["by"] = ["a"] + + with pytest.raises(ValueError, match=msg): + getattr(dataframe, func)(**kwargs) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/generic/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/generic/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/generic/test_duplicate_labels.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/generic/test_duplicate_labels.py new file mode 100644 index 0000000000000000000000000000000000000000..f54db07824daf15eb01c32490495deff3736b14d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/generic/test_duplicate_labels.py @@ -0,0 +1,413 @@ +"""Tests dealing with the NDFrame.allows_duplicates.""" +import operator + +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm + +not_implemented = pytest.mark.xfail(reason="Not implemented.") + +# ---------------------------------------------------------------------------- +# Preservation + + +class TestPreserves: + @pytest.mark.parametrize( + "cls, data", + [ + (pd.Series, np.array([])), + (pd.Series, [1, 2]), + (pd.DataFrame, {}), + (pd.DataFrame, {"A": [1, 2]}), + ], + ) + def test_construction_ok(self, cls, data): + result = cls(data) + assert result.flags.allows_duplicate_labels is True + + result = cls(data).set_flags(allows_duplicate_labels=False) + assert result.flags.allows_duplicate_labels is False + + @pytest.mark.parametrize( + "func", + [ + operator.itemgetter(["a"]), + operator.methodcaller("add", 1), + operator.methodcaller("rename", str.upper), + operator.methodcaller("rename", "name"), + operator.methodcaller("abs"), + np.abs, + ], + ) + def test_preserved_series(self, func): + s = pd.Series([0, 1], index=["a", "b"]).set_flags(allows_duplicate_labels=False) + assert func(s).flags.allows_duplicate_labels is False + + @pytest.mark.parametrize( + "other", [pd.Series(0, index=["a", "b", "c"]), pd.Series(0, index=["a", "b"])] + ) + # TODO: frame + @not_implemented + def test_align(self, other): + s = pd.Series([0, 1], index=["a", "b"]).set_flags(allows_duplicate_labels=False) + a, b = s.align(other) + assert a.flags.allows_duplicate_labels is False + assert b.flags.allows_duplicate_labels is False + + def test_preserved_frame(self): + df = pd.DataFrame({"A": [1, 2], "B": [3, 4]}, index=["a", "b"]).set_flags( + allows_duplicate_labels=False + ) + assert df.loc[["a"]].flags.allows_duplicate_labels is False + assert df.loc[:, ["A", "B"]].flags.allows_duplicate_labels is False + + def test_to_frame(self): + ser = pd.Series(dtype=float).set_flags(allows_duplicate_labels=False) + assert ser.to_frame().flags.allows_duplicate_labels is False + + @pytest.mark.parametrize("func", ["add", "sub"]) + @pytest.mark.parametrize("frame", [False, True]) + @pytest.mark.parametrize("other", [1, pd.Series([1, 2], name="A")]) + def test_binops(self, func, other, frame): + df = pd.Series([1, 2], name="A", index=["a", "b"]).set_flags( + allows_duplicate_labels=False + ) + if frame: + df = df.to_frame() + if isinstance(other, pd.Series) and frame: + other = other.to_frame() + func = operator.methodcaller(func, other) + assert df.flags.allows_duplicate_labels is False + assert func(df).flags.allows_duplicate_labels is False + + def test_preserve_getitem(self): + df = pd.DataFrame({"A": [1, 2]}).set_flags(allows_duplicate_labels=False) + assert df[["A"]].flags.allows_duplicate_labels is False + assert df["A"].flags.allows_duplicate_labels is False + assert df.loc[0].flags.allows_duplicate_labels is False + assert df.loc[[0]].flags.allows_duplicate_labels is False + assert df.loc[0, ["A"]].flags.allows_duplicate_labels is False + + def test_ndframe_getitem_caching_issue( + self, request, using_copy_on_write, warn_copy_on_write + ): + if not (using_copy_on_write or warn_copy_on_write): + request.applymarker(pytest.mark.xfail(reason="Unclear behavior.")) + # NDFrame.__getitem__ will cache the first df['A']. May need to + # invalidate that cache? Update the cached entries? + df = pd.DataFrame({"A": [0]}).set_flags(allows_duplicate_labels=False) + assert df["A"].flags.allows_duplicate_labels is False + df.flags.allows_duplicate_labels = True + assert df["A"].flags.allows_duplicate_labels is True + + @pytest.mark.parametrize( + "objs, kwargs", + [ + # Series + ( + [ + pd.Series(1, index=["a", "b"]), + pd.Series(2, index=["c", "d"]), + ], + {}, + ), + ( + [ + pd.Series(1, index=["a", "b"]), + pd.Series(2, index=["a", "b"]), + ], + {"ignore_index": True}, + ), + ( + [ + pd.Series(1, index=["a", "b"]), + pd.Series(2, index=["a", "b"]), + ], + {"axis": 1}, + ), + # Frame + ( + [ + pd.DataFrame({"A": [1, 2]}, index=["a", "b"]), + pd.DataFrame({"A": [1, 2]}, index=["c", "d"]), + ], + {}, + ), + ( + [ + pd.DataFrame({"A": [1, 2]}, index=["a", "b"]), + pd.DataFrame({"A": [1, 2]}, index=["a", "b"]), + ], + {"ignore_index": True}, + ), + ( + [ + pd.DataFrame({"A": [1, 2]}, index=["a", "b"]), + pd.DataFrame({"B": [1, 2]}, index=["a", "b"]), + ], + {"axis": 1}, + ), + # Series / Frame + ( + [ + pd.DataFrame({"A": [1, 2]}, index=["a", "b"]), + pd.Series([1, 2], index=["a", "b"], name="B"), + ], + {"axis": 1}, + ), + ], + ) + def test_concat(self, objs, kwargs): + objs = [x.set_flags(allows_duplicate_labels=False) for x in objs] + result = pd.concat(objs, **kwargs) + assert result.flags.allows_duplicate_labels is False + + @pytest.mark.parametrize( + "left, right, expected", + [ + # false false false + pytest.param( + pd.DataFrame({"A": [0, 1]}, index=["a", "b"]).set_flags( + allows_duplicate_labels=False + ), + pd.DataFrame({"B": [0, 1]}, index=["a", "d"]).set_flags( + allows_duplicate_labels=False + ), + False, + marks=not_implemented, + ), + # false true false + pytest.param( + pd.DataFrame({"A": [0, 1]}, index=["a", "b"]).set_flags( + allows_duplicate_labels=False + ), + pd.DataFrame({"B": [0, 1]}, index=["a", "d"]), + False, + marks=not_implemented, + ), + # true true true + ( + pd.DataFrame({"A": [0, 1]}, index=["a", "b"]), + pd.DataFrame({"B": [0, 1]}, index=["a", "d"]), + True, + ), + ], + ) + def test_merge(self, left, right, expected): + result = pd.merge(left, right, left_index=True, right_index=True) + assert result.flags.allows_duplicate_labels is expected + + @not_implemented + def test_groupby(self): + # XXX: This is under tested + # TODO: + # - apply + # - transform + # - Should passing a grouper that disallows duplicates propagate? + df = pd.DataFrame({"A": [1, 2, 3]}).set_flags(allows_duplicate_labels=False) + result = df.groupby([0, 0, 1]).agg("count") + assert result.flags.allows_duplicate_labels is False + + @pytest.mark.parametrize("frame", [True, False]) + @not_implemented + def test_window(self, frame): + df = pd.Series( + 1, + index=pd.date_range("2000", periods=12), + name="A", + allows_duplicate_labels=False, + ) + if frame: + df = df.to_frame() + assert df.rolling(3).mean().flags.allows_duplicate_labels is False + assert df.ewm(3).mean().flags.allows_duplicate_labels is False + assert df.expanding(3).mean().flags.allows_duplicate_labels is False + + +# ---------------------------------------------------------------------------- +# Raises + + +class TestRaises: + @pytest.mark.parametrize( + "cls, axes", + [ + (pd.Series, {"index": ["a", "a"], "dtype": float}), + (pd.DataFrame, {"index": ["a", "a"]}), + (pd.DataFrame, {"index": ["a", "a"], "columns": ["b", "b"]}), + (pd.DataFrame, {"columns": ["b", "b"]}), + ], + ) + def test_set_flags_with_duplicates(self, cls, axes): + result = cls(**axes) + assert result.flags.allows_duplicate_labels is True + + msg = "Index has duplicates." + with pytest.raises(pd.errors.DuplicateLabelError, match=msg): + cls(**axes).set_flags(allows_duplicate_labels=False) + + @pytest.mark.parametrize( + "data", + [ + pd.Series(index=[0, 0], dtype=float), + pd.DataFrame(index=[0, 0]), + pd.DataFrame(columns=[0, 0]), + ], + ) + def test_setting_allows_duplicate_labels_raises(self, data): + msg = "Index has duplicates." + with pytest.raises(pd.errors.DuplicateLabelError, match=msg): + data.flags.allows_duplicate_labels = False + + assert data.flags.allows_duplicate_labels is True + + def test_series_raises(self): + a = pd.Series(0, index=["a", "b"]) + b = pd.Series([0, 1], index=["a", "b"]).set_flags(allows_duplicate_labels=False) + msg = "Index has duplicates." + with pytest.raises(pd.errors.DuplicateLabelError, match=msg): + pd.concat([a, b]) + + @pytest.mark.parametrize( + "getter, target", + [ + (operator.itemgetter(["A", "A"]), None), + # loc + (operator.itemgetter(["a", "a"]), "loc"), + pytest.param(operator.itemgetter(("a", ["A", "A"])), "loc"), + (operator.itemgetter((["a", "a"], "A")), "loc"), + # iloc + (operator.itemgetter([0, 0]), "iloc"), + pytest.param(operator.itemgetter((0, [0, 0])), "iloc"), + pytest.param(operator.itemgetter(([0, 0], 0)), "iloc"), + ], + ) + def test_getitem_raises(self, getter, target): + df = pd.DataFrame({"A": [1, 2], "B": [3, 4]}, index=["a", "b"]).set_flags( + allows_duplicate_labels=False + ) + if target: + # df, df.loc, or df.iloc + target = getattr(df, target) + else: + target = df + + msg = "Index has duplicates." + with pytest.raises(pd.errors.DuplicateLabelError, match=msg): + getter(target) + + @pytest.mark.parametrize( + "objs, kwargs", + [ + ( + [ + pd.Series(1, index=[0, 1], name="a"), + pd.Series(2, index=[0, 1], name="a"), + ], + {"axis": 1}, + ) + ], + ) + def test_concat_raises(self, objs, kwargs): + objs = [x.set_flags(allows_duplicate_labels=False) for x in objs] + msg = "Index has duplicates." + with pytest.raises(pd.errors.DuplicateLabelError, match=msg): + pd.concat(objs, **kwargs) + + @not_implemented + def test_merge_raises(self): + a = pd.DataFrame({"A": [0, 1, 2]}, index=["a", "b", "c"]).set_flags( + allows_duplicate_labels=False + ) + b = pd.DataFrame({"B": [0, 1, 2]}, index=["a", "b", "b"]) + msg = "Index has duplicates." + with pytest.raises(pd.errors.DuplicateLabelError, match=msg): + pd.merge(a, b, left_index=True, right_index=True) + + +@pytest.mark.parametrize( + "idx", + [ + pd.Index([1, 1]), + pd.Index(["a", "a"]), + pd.Index([1.1, 1.1]), + pd.PeriodIndex([pd.Period("2000", "D")] * 2), + pd.DatetimeIndex([pd.Timestamp("2000")] * 2), + pd.TimedeltaIndex([pd.Timedelta("1D")] * 2), + pd.CategoricalIndex(["a", "a"]), + pd.IntervalIndex([pd.Interval(0, 1)] * 2), + pd.MultiIndex.from_tuples([("a", 1), ("a", 1)]), + ], + ids=lambda x: type(x).__name__, +) +def test_raises_basic(idx): + msg = "Index has duplicates." + with pytest.raises(pd.errors.DuplicateLabelError, match=msg): + pd.Series(1, index=idx).set_flags(allows_duplicate_labels=False) + + with pytest.raises(pd.errors.DuplicateLabelError, match=msg): + pd.DataFrame({"A": [1, 1]}, index=idx).set_flags(allows_duplicate_labels=False) + + with pytest.raises(pd.errors.DuplicateLabelError, match=msg): + pd.DataFrame([[1, 2]], columns=idx).set_flags(allows_duplicate_labels=False) + + +def test_format_duplicate_labels_message(): + idx = pd.Index(["a", "b", "a", "b", "c"]) + result = idx._format_duplicate_message() + expected = pd.DataFrame( + {"positions": [[0, 2], [1, 3]]}, index=pd.Index(["a", "b"], name="label") + ) + tm.assert_frame_equal(result, expected) + + +def test_format_duplicate_labels_message_multi(): + idx = pd.MultiIndex.from_product([["A"], ["a", "b", "a", "b", "c"]]) + result = idx._format_duplicate_message() + expected = pd.DataFrame( + {"positions": [[0, 2], [1, 3]]}, + index=pd.MultiIndex.from_product([["A"], ["a", "b"]]), + ) + tm.assert_frame_equal(result, expected) + + +def test_dataframe_insert_raises(): + df = pd.DataFrame({"A": [1, 2]}).set_flags(allows_duplicate_labels=False) + msg = "Cannot specify" + with pytest.raises(ValueError, match=msg): + df.insert(0, "A", [3, 4], allow_duplicates=True) + + +@pytest.mark.parametrize( + "method, frame_only", + [ + (operator.methodcaller("set_index", "A", inplace=True), True), + (operator.methodcaller("reset_index", inplace=True), True), + (operator.methodcaller("rename", lambda x: x, inplace=True), False), + ], +) +def test_inplace_raises(method, frame_only): + df = pd.DataFrame({"A": [0, 0], "B": [1, 2]}).set_flags( + allows_duplicate_labels=False + ) + s = df["A"] + s.flags.allows_duplicate_labels = False + msg = "Cannot specify" + + with pytest.raises(ValueError, match=msg): + method(df) + if not frame_only: + with pytest.raises(ValueError, match=msg): + method(s) + + +def test_pickle(): + a = pd.Series([1, 2]).set_flags(allows_duplicate_labels=False) + b = tm.round_trip_pickle(a) + tm.assert_series_equal(a, b) + + a = pd.DataFrame({"A": []}).set_flags(allows_duplicate_labels=False) + b = tm.round_trip_pickle(a) + tm.assert_frame_equal(a, b) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/generic/test_finalize.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/generic/test_finalize.py new file mode 100644 index 0000000000000000000000000000000000000000..866e9e203ffe3ac1fe29d86b87bbacccf1268e12 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/generic/test_finalize.py @@ -0,0 +1,767 @@ +""" +An exhaustive list of pandas methods exercising NDFrame.__finalize__. +""" +import operator +import re + +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm + +# TODO: +# * Binary methods (mul, div, etc.) +# * Binary outputs (align, etc.) +# * top-level methods (concat, merge, get_dummies, etc.) +# * window +# * cumulative reductions + +not_implemented_mark = pytest.mark.xfail(reason="not implemented") + +mi = pd.MultiIndex.from_product([["a", "b"], [0, 1]], names=["A", "B"]) + +frame_data = ({"A": [1]},) +frame_mi_data = ({"A": [1, 2, 3, 4]}, mi) + + +# Tuple of +# - Callable: Constructor (Series, DataFrame) +# - Tuple: Constructor args +# - Callable: pass the constructed value with attrs set to this. + +_all_methods = [ + (pd.Series, ([0],), operator.methodcaller("take", [])), + (pd.Series, ([0],), operator.methodcaller("__getitem__", [True])), + (pd.Series, ([0],), operator.methodcaller("repeat", 2)), + (pd.Series, ([0],), operator.methodcaller("reset_index")), + (pd.Series, ([0],), operator.methodcaller("reset_index", drop=True)), + (pd.Series, ([0],), operator.methodcaller("to_frame")), + (pd.Series, ([0, 0],), operator.methodcaller("drop_duplicates")), + (pd.Series, ([0, 0],), operator.methodcaller("duplicated")), + (pd.Series, ([0, 0],), operator.methodcaller("round")), + (pd.Series, ([0, 0],), operator.methodcaller("rename", lambda x: x + 1)), + (pd.Series, ([0, 0],), operator.methodcaller("rename", "name")), + (pd.Series, ([0, 0],), operator.methodcaller("set_axis", ["a", "b"])), + (pd.Series, ([0, 0],), operator.methodcaller("reindex", [1, 0])), + (pd.Series, ([0, 0],), operator.methodcaller("drop", [0])), + (pd.Series, (pd.array([0, pd.NA]),), operator.methodcaller("fillna", 0)), + (pd.Series, ([0, 0],), operator.methodcaller("replace", {0: 1})), + (pd.Series, ([0, 0],), operator.methodcaller("shift")), + (pd.Series, ([0, 0],), operator.methodcaller("isin", [0, 1])), + (pd.Series, ([0, 0],), operator.methodcaller("between", 0, 2)), + (pd.Series, ([0, 0],), operator.methodcaller("isna")), + (pd.Series, ([0, 0],), operator.methodcaller("isnull")), + (pd.Series, ([0, 0],), operator.methodcaller("notna")), + (pd.Series, ([0, 0],), operator.methodcaller("notnull")), + (pd.Series, ([1],), operator.methodcaller("add", pd.Series([1]))), + # TODO: mul, div, etc. + ( + pd.Series, + ([0], pd.period_range("2000", periods=1)), + operator.methodcaller("to_timestamp"), + ), + ( + pd.Series, + ([0], pd.date_range("2000", periods=1)), + operator.methodcaller("to_period"), + ), + pytest.param( + ( + pd.DataFrame, + frame_data, + operator.methodcaller("dot", pd.DataFrame(index=["A"])), + ), + marks=pytest.mark.xfail(reason="Implement binary finalize"), + ), + (pd.DataFrame, frame_data, operator.methodcaller("transpose")), + (pd.DataFrame, frame_data, operator.methodcaller("__getitem__", "A")), + (pd.DataFrame, frame_data, operator.methodcaller("__getitem__", ["A"])), + (pd.DataFrame, frame_data, operator.methodcaller("__getitem__", np.array([True]))), + (pd.DataFrame, ({("A", "a"): [1]},), operator.methodcaller("__getitem__", ["A"])), + (pd.DataFrame, frame_data, operator.methodcaller("query", "A == 1")), + (pd.DataFrame, frame_data, operator.methodcaller("eval", "A + 1", engine="python")), + (pd.DataFrame, frame_data, operator.methodcaller("select_dtypes", include="int")), + (pd.DataFrame, frame_data, operator.methodcaller("assign", b=1)), + (pd.DataFrame, frame_data, operator.methodcaller("set_axis", ["A"])), + (pd.DataFrame, frame_data, operator.methodcaller("reindex", [0, 1])), + (pd.DataFrame, frame_data, operator.methodcaller("drop", columns=["A"])), + (pd.DataFrame, frame_data, operator.methodcaller("drop", index=[0])), + (pd.DataFrame, frame_data, operator.methodcaller("rename", columns={"A": "a"})), + (pd.DataFrame, frame_data, operator.methodcaller("rename", index=lambda x: x)), + (pd.DataFrame, frame_data, operator.methodcaller("fillna", "A")), + (pd.DataFrame, frame_data, operator.methodcaller("fillna", method="ffill")), + (pd.DataFrame, frame_data, operator.methodcaller("set_index", "A")), + (pd.DataFrame, frame_data, operator.methodcaller("reset_index")), + (pd.DataFrame, frame_data, operator.methodcaller("isna")), + (pd.DataFrame, frame_data, operator.methodcaller("isnull")), + (pd.DataFrame, frame_data, operator.methodcaller("notna")), + (pd.DataFrame, frame_data, operator.methodcaller("notnull")), + (pd.DataFrame, frame_data, operator.methodcaller("dropna")), + (pd.DataFrame, frame_data, operator.methodcaller("drop_duplicates")), + (pd.DataFrame, frame_data, operator.methodcaller("duplicated")), + (pd.DataFrame, frame_data, operator.methodcaller("sort_values", by="A")), + (pd.DataFrame, frame_data, operator.methodcaller("sort_index")), + (pd.DataFrame, frame_data, operator.methodcaller("nlargest", 1, "A")), + (pd.DataFrame, frame_data, operator.methodcaller("nsmallest", 1, "A")), + (pd.DataFrame, frame_mi_data, operator.methodcaller("swaplevel")), + ( + pd.DataFrame, + frame_data, + operator.methodcaller("add", pd.DataFrame(*frame_data)), + ), + # TODO: div, mul, etc. + ( + pd.DataFrame, + frame_data, + operator.methodcaller("combine", pd.DataFrame(*frame_data), operator.add), + ), + ( + pd.DataFrame, + frame_data, + operator.methodcaller("combine_first", pd.DataFrame(*frame_data)), + ), + pytest.param( + ( + pd.DataFrame, + frame_data, + operator.methodcaller("update", pd.DataFrame(*frame_data)), + ), + marks=not_implemented_mark, + ), + (pd.DataFrame, frame_data, operator.methodcaller("pivot", columns="A")), + ( + pd.DataFrame, + ({"A": [1], "B": [1]},), + operator.methodcaller("pivot_table", columns="A"), + ), + ( + pd.DataFrame, + ({"A": [1], "B": [1]},), + operator.methodcaller("pivot_table", columns="A", aggfunc=["mean", "sum"]), + ), + (pd.DataFrame, frame_data, operator.methodcaller("stack")), + (pd.DataFrame, frame_data, operator.methodcaller("explode", "A")), + (pd.DataFrame, frame_mi_data, operator.methodcaller("unstack")), + ( + pd.DataFrame, + ({"A": ["a", "b", "c"], "B": [1, 3, 5], "C": [2, 4, 6]},), + operator.methodcaller("melt", id_vars=["A"], value_vars=["B"]), + ), + (pd.DataFrame, frame_data, operator.methodcaller("map", lambda x: x)), + pytest.param( + ( + pd.DataFrame, + frame_data, + operator.methodcaller("merge", pd.DataFrame({"A": [1]})), + ), + marks=not_implemented_mark, + ), + (pd.DataFrame, frame_data, operator.methodcaller("round", 2)), + (pd.DataFrame, frame_data, operator.methodcaller("corr")), + pytest.param( + (pd.DataFrame, frame_data, operator.methodcaller("cov")), + marks=[ + pytest.mark.filterwarnings("ignore::RuntimeWarning"), + ], + ), + ( + pd.DataFrame, + frame_data, + operator.methodcaller("corrwith", pd.DataFrame(*frame_data)), + ), + (pd.DataFrame, frame_data, operator.methodcaller("count")), + (pd.DataFrame, frame_data, operator.methodcaller("nunique")), + (pd.DataFrame, frame_data, operator.methodcaller("idxmin")), + (pd.DataFrame, frame_data, operator.methodcaller("idxmax")), + (pd.DataFrame, frame_data, operator.methodcaller("mode")), + (pd.Series, [0], operator.methodcaller("mode")), + (pd.DataFrame, frame_data, operator.methodcaller("median")), + ( + pd.DataFrame, + frame_data, + operator.methodcaller("quantile", numeric_only=True), + ), + ( + pd.DataFrame, + frame_data, + operator.methodcaller("quantile", q=[0.25, 0.75], numeric_only=True), + ), + ( + pd.DataFrame, + ({"A": [pd.Timedelta(days=1), pd.Timedelta(days=2)]},), + operator.methodcaller("quantile", numeric_only=False), + ), + ( + pd.DataFrame, + ({"A": [np.datetime64("2022-01-01"), np.datetime64("2022-01-02")]},), + operator.methodcaller("quantile", numeric_only=True), + ), + ( + pd.DataFrame, + ({"A": [1]}, [pd.Period("2000", "D")]), + operator.methodcaller("to_timestamp"), + ), + ( + pd.DataFrame, + ({"A": [1]}, [pd.Timestamp("2000")]), + operator.methodcaller("to_period", freq="D"), + ), + (pd.DataFrame, frame_mi_data, operator.methodcaller("isin", [1])), + (pd.DataFrame, frame_mi_data, operator.methodcaller("isin", pd.Series([1]))), + ( + pd.DataFrame, + frame_mi_data, + operator.methodcaller("isin", pd.DataFrame({"A": [1]})), + ), + (pd.DataFrame, frame_mi_data, operator.methodcaller("droplevel", "A")), + (pd.DataFrame, frame_data, operator.methodcaller("pop", "A")), + # Squeeze on columns, otherwise we'll end up with a scalar + (pd.DataFrame, frame_data, operator.methodcaller("squeeze", axis="columns")), + (pd.Series, ([1, 2],), operator.methodcaller("squeeze")), + (pd.Series, ([1, 2],), operator.methodcaller("rename_axis", index="a")), + (pd.DataFrame, frame_data, operator.methodcaller("rename_axis", columns="a")), + # Unary ops + (pd.DataFrame, frame_data, operator.neg), + (pd.Series, [1], operator.neg), + (pd.DataFrame, frame_data, operator.pos), + (pd.Series, [1], operator.pos), + (pd.DataFrame, frame_data, operator.inv), + (pd.Series, [1], operator.inv), + (pd.DataFrame, frame_data, abs), + (pd.Series, [1], abs), + (pd.DataFrame, frame_data, round), + (pd.Series, [1], round), + (pd.DataFrame, frame_data, operator.methodcaller("take", [0, 0])), + (pd.DataFrame, frame_mi_data, operator.methodcaller("xs", "a")), + (pd.Series, (1, mi), operator.methodcaller("xs", "a")), + (pd.DataFrame, frame_data, operator.methodcaller("get", "A")), + ( + pd.DataFrame, + frame_data, + operator.methodcaller("reindex_like", pd.DataFrame({"A": [1, 2, 3]})), + ), + ( + pd.Series, + frame_data, + operator.methodcaller("reindex_like", pd.Series([0, 1, 2])), + ), + (pd.DataFrame, frame_data, operator.methodcaller("add_prefix", "_")), + (pd.DataFrame, frame_data, operator.methodcaller("add_suffix", "_")), + (pd.Series, (1, ["a", "b"]), operator.methodcaller("add_prefix", "_")), + (pd.Series, (1, ["a", "b"]), operator.methodcaller("add_suffix", "_")), + (pd.Series, ([3, 2],), operator.methodcaller("sort_values")), + (pd.Series, ([1] * 10,), operator.methodcaller("head")), + (pd.DataFrame, ({"A": [1] * 10},), operator.methodcaller("head")), + (pd.Series, ([1] * 10,), operator.methodcaller("tail")), + (pd.DataFrame, ({"A": [1] * 10},), operator.methodcaller("tail")), + (pd.Series, ([1, 2],), operator.methodcaller("sample", n=2, replace=True)), + (pd.DataFrame, (frame_data,), operator.methodcaller("sample", n=2, replace=True)), + (pd.Series, ([1, 2],), operator.methodcaller("astype", float)), + (pd.DataFrame, frame_data, operator.methodcaller("astype", float)), + (pd.Series, ([1, 2],), operator.methodcaller("copy")), + (pd.DataFrame, frame_data, operator.methodcaller("copy")), + (pd.Series, ([1, 2], None, object), operator.methodcaller("infer_objects")), + ( + pd.DataFrame, + ({"A": np.array([1, 2], dtype=object)},), + operator.methodcaller("infer_objects"), + ), + (pd.Series, ([1, 2],), operator.methodcaller("convert_dtypes")), + (pd.DataFrame, frame_data, operator.methodcaller("convert_dtypes")), + (pd.Series, ([1, None, 3],), operator.methodcaller("interpolate")), + (pd.DataFrame, ({"A": [1, None, 3]},), operator.methodcaller("interpolate")), + (pd.Series, ([1, 2],), operator.methodcaller("clip", lower=1)), + (pd.DataFrame, frame_data, operator.methodcaller("clip", lower=1)), + ( + pd.Series, + (1, pd.date_range("2000", periods=4)), + operator.methodcaller("asfreq", "h"), + ), + ( + pd.DataFrame, + ({"A": [1, 1, 1, 1]}, pd.date_range("2000", periods=4)), + operator.methodcaller("asfreq", "h"), + ), + ( + pd.Series, + (1, pd.date_range("2000", periods=4)), + operator.methodcaller("at_time", "12:00"), + ), + ( + pd.DataFrame, + ({"A": [1, 1, 1, 1]}, pd.date_range("2000", periods=4)), + operator.methodcaller("at_time", "12:00"), + ), + ( + pd.Series, + (1, pd.date_range("2000", periods=4)), + operator.methodcaller("between_time", "12:00", "13:00"), + ), + ( + pd.DataFrame, + ({"A": [1, 1, 1, 1]}, pd.date_range("2000", periods=4)), + operator.methodcaller("between_time", "12:00", "13:00"), + ), + ( + pd.Series, + (1, pd.date_range("2000", periods=4)), + operator.methodcaller("last", "3D"), + ), + ( + pd.DataFrame, + ({"A": [1, 1, 1, 1]}, pd.date_range("2000", periods=4)), + operator.methodcaller("last", "3D"), + ), + (pd.Series, ([1, 2],), operator.methodcaller("rank")), + (pd.DataFrame, frame_data, operator.methodcaller("rank")), + (pd.Series, ([1, 2],), operator.methodcaller("where", np.array([True, False]))), + (pd.DataFrame, frame_data, operator.methodcaller("where", np.array([[True]]))), + (pd.Series, ([1, 2],), operator.methodcaller("mask", np.array([True, False]))), + (pd.DataFrame, frame_data, operator.methodcaller("mask", np.array([[True]]))), + (pd.Series, ([1, 2],), operator.methodcaller("truncate", before=0)), + (pd.DataFrame, frame_data, operator.methodcaller("truncate", before=0)), + ( + pd.Series, + (1, pd.date_range("2000", periods=4, tz="UTC")), + operator.methodcaller("tz_convert", "CET"), + ), + ( + pd.DataFrame, + ({"A": [1, 1, 1, 1]}, pd.date_range("2000", periods=4, tz="UTC")), + operator.methodcaller("tz_convert", "CET"), + ), + ( + pd.Series, + (1, pd.date_range("2000", periods=4)), + operator.methodcaller("tz_localize", "CET"), + ), + ( + pd.DataFrame, + ({"A": [1, 1, 1, 1]}, pd.date_range("2000", periods=4)), + operator.methodcaller("tz_localize", "CET"), + ), + (pd.Series, ([1, 2],), operator.methodcaller("describe")), + (pd.DataFrame, frame_data, operator.methodcaller("describe")), + (pd.Series, ([1, 2],), operator.methodcaller("pct_change")), + (pd.DataFrame, frame_data, operator.methodcaller("pct_change")), + (pd.Series, ([1],), operator.methodcaller("transform", lambda x: x - x.min())), + ( + pd.DataFrame, + frame_mi_data, + operator.methodcaller("transform", lambda x: x - x.min()), + ), + (pd.Series, ([1],), operator.methodcaller("apply", lambda x: x)), + (pd.DataFrame, frame_mi_data, operator.methodcaller("apply", lambda x: x)), + # Cumulative reductions + (pd.Series, ([1],), operator.methodcaller("cumsum")), + (pd.DataFrame, frame_data, operator.methodcaller("cumsum")), + (pd.Series, ([1],), operator.methodcaller("cummin")), + (pd.DataFrame, frame_data, operator.methodcaller("cummin")), + (pd.Series, ([1],), operator.methodcaller("cummax")), + (pd.DataFrame, frame_data, operator.methodcaller("cummax")), + (pd.Series, ([1],), operator.methodcaller("cumprod")), + (pd.DataFrame, frame_data, operator.methodcaller("cumprod")), + # Reductions + (pd.DataFrame, frame_data, operator.methodcaller("any")), + (pd.DataFrame, frame_data, operator.methodcaller("all")), + (pd.DataFrame, frame_data, operator.methodcaller("min")), + (pd.DataFrame, frame_data, operator.methodcaller("max")), + (pd.DataFrame, frame_data, operator.methodcaller("sum")), + (pd.DataFrame, frame_data, operator.methodcaller("std")), + (pd.DataFrame, frame_data, operator.methodcaller("mean")), + (pd.DataFrame, frame_data, operator.methodcaller("prod")), + (pd.DataFrame, frame_data, operator.methodcaller("sem")), + (pd.DataFrame, frame_data, operator.methodcaller("skew")), + (pd.DataFrame, frame_data, operator.methodcaller("kurt")), +] + + +def idfn(x): + xpr = re.compile(r"'(.*)?'") + m = xpr.search(str(x)) + if m: + return m.group(1) + else: + return str(x) + + +@pytest.fixture(params=_all_methods, ids=lambda x: idfn(x[-1])) +def ndframe_method(request): + """ + An NDFrame method returning an NDFrame. + """ + return request.param + + +@pytest.mark.filterwarnings( + "ignore:DataFrame.fillna with 'method' is deprecated:FutureWarning", + "ignore:last is deprecated:FutureWarning", +) +def test_finalize_called(ndframe_method): + cls, init_args, method = ndframe_method + ndframe = cls(*init_args) + + ndframe.attrs = {"a": 1} + result = method(ndframe) + + assert result.attrs == {"a": 1} + + +@pytest.mark.parametrize( + "data", + [ + pd.Series(1, pd.date_range("2000", periods=4)), + pd.DataFrame({"A": [1, 1, 1, 1]}, pd.date_range("2000", periods=4)), + ], +) +def test_finalize_first(data): + deprecated_msg = "first is deprecated" + + data.attrs = {"a": 1} + with tm.assert_produces_warning(FutureWarning, match=deprecated_msg): + result = data.first("3D") + assert result.attrs == {"a": 1} + + +@pytest.mark.parametrize( + "data", + [ + pd.Series(1, pd.date_range("2000", periods=4)), + pd.DataFrame({"A": [1, 1, 1, 1]}, pd.date_range("2000", periods=4)), + ], +) +def test_finalize_last(data): + # GH 53710 + deprecated_msg = "last is deprecated" + + data.attrs = {"a": 1} + with tm.assert_produces_warning(FutureWarning, match=deprecated_msg): + result = data.last("3D") + assert result.attrs == {"a": 1} + + +@not_implemented_mark +def test_finalize_called_eval_numexpr(): + pytest.importorskip("numexpr") + df = pd.DataFrame({"A": [1, 2]}) + df.attrs["A"] = 1 + result = df.eval("A + 1", engine="numexpr") + assert result.attrs == {"A": 1} + + +# ---------------------------------------------------------------------------- +# Binary operations + + +@pytest.mark.parametrize("annotate", ["left", "right", "both"]) +@pytest.mark.parametrize( + "args", + [ + (1, pd.Series([1])), + (1, pd.DataFrame({"A": [1]})), + (pd.Series([1]), 1), + (pd.DataFrame({"A": [1]}), 1), + (pd.Series([1]), pd.Series([1])), + (pd.DataFrame({"A": [1]}), pd.DataFrame({"A": [1]})), + (pd.Series([1]), pd.DataFrame({"A": [1]})), + (pd.DataFrame({"A": [1]}), pd.Series([1])), + ], + ids=lambda x: f"({type(x[0]).__name__},{type(x[1]).__name__})", +) +def test_binops(request, args, annotate, all_binary_operators): + # This generates 624 tests... Is that needed? + left, right = args + if isinstance(left, (pd.DataFrame, pd.Series)): + left.attrs = {} + if isinstance(right, (pd.DataFrame, pd.Series)): + right.attrs = {} + + if annotate == "left" and isinstance(left, int): + pytest.skip("left is an int and doesn't support .attrs") + if annotate == "right" and isinstance(right, int): + pytest.skip("right is an int and doesn't support .attrs") + + if not (isinstance(left, int) or isinstance(right, int)) and annotate != "both": + if not all_binary_operators.__name__.startswith("r"): + if annotate == "right" and isinstance(left, type(right)): + request.applymarker( + pytest.mark.xfail( + reason=f"{all_binary_operators} doesn't work when right has " + f"attrs and both are {type(left)}" + ) + ) + if not isinstance(left, type(right)): + if annotate == "left" and isinstance(left, pd.Series): + request.applymarker( + pytest.mark.xfail( + reason=f"{all_binary_operators} doesn't work when the " + "objects are different Series has attrs" + ) + ) + elif annotate == "right" and isinstance(right, pd.Series): + request.applymarker( + pytest.mark.xfail( + reason=f"{all_binary_operators} doesn't work when the " + "objects are different Series has attrs" + ) + ) + else: + if annotate == "left" and isinstance(left, type(right)): + request.applymarker( + pytest.mark.xfail( + reason=f"{all_binary_operators} doesn't work when left has " + f"attrs and both are {type(left)}" + ) + ) + if not isinstance(left, type(right)): + if annotate == "right" and isinstance(right, pd.Series): + request.applymarker( + pytest.mark.xfail( + reason=f"{all_binary_operators} doesn't work when the " + "objects are different Series has attrs" + ) + ) + elif annotate == "left" and isinstance(left, pd.Series): + request.applymarker( + pytest.mark.xfail( + reason=f"{all_binary_operators} doesn't work when the " + "objects are different Series has attrs" + ) + ) + if annotate in {"left", "both"} and not isinstance(left, int): + left.attrs = {"a": 1} + if annotate in {"right", "both"} and not isinstance(right, int): + right.attrs = {"a": 1} + + is_cmp = all_binary_operators in [ + operator.eq, + operator.ne, + operator.gt, + operator.ge, + operator.lt, + operator.le, + ] + if is_cmp and isinstance(left, pd.DataFrame) and isinstance(right, pd.Series): + # in 2.0 silent alignment on comparisons was removed xref GH#28759 + left, right = left.align(right, axis=1, copy=False) + elif is_cmp and isinstance(left, pd.Series) and isinstance(right, pd.DataFrame): + right, left = right.align(left, axis=1, copy=False) + + result = all_binary_operators(left, right) + assert result.attrs == {"a": 1} + + +# ---------------------------------------------------------------------------- +# Accessors + + +@pytest.mark.parametrize( + "method", + [ + operator.methodcaller("capitalize"), + operator.methodcaller("casefold"), + operator.methodcaller("cat", ["a"]), + operator.methodcaller("contains", "a"), + operator.methodcaller("count", "a"), + operator.methodcaller("encode", "utf-8"), + operator.methodcaller("endswith", "a"), + operator.methodcaller("extract", r"(\w)(\d)"), + operator.methodcaller("extract", r"(\w)(\d)", expand=False), + operator.methodcaller("find", "a"), + operator.methodcaller("findall", "a"), + operator.methodcaller("get", 0), + operator.methodcaller("index", "a"), + operator.methodcaller("len"), + operator.methodcaller("ljust", 4), + operator.methodcaller("lower"), + operator.methodcaller("lstrip"), + operator.methodcaller("match", r"\w"), + operator.methodcaller("normalize", "NFC"), + operator.methodcaller("pad", 4), + operator.methodcaller("partition", "a"), + operator.methodcaller("repeat", 2), + operator.methodcaller("replace", "a", "b"), + operator.methodcaller("rfind", "a"), + operator.methodcaller("rindex", "a"), + operator.methodcaller("rjust", 4), + operator.methodcaller("rpartition", "a"), + operator.methodcaller("rstrip"), + operator.methodcaller("slice", 4), + operator.methodcaller("slice_replace", 1, repl="a"), + operator.methodcaller("startswith", "a"), + operator.methodcaller("strip"), + operator.methodcaller("swapcase"), + operator.methodcaller("translate", {"a": "b"}), + operator.methodcaller("upper"), + operator.methodcaller("wrap", 4), + operator.methodcaller("zfill", 4), + operator.methodcaller("isalnum"), + operator.methodcaller("isalpha"), + operator.methodcaller("isdigit"), + operator.methodcaller("isspace"), + operator.methodcaller("islower"), + operator.methodcaller("isupper"), + operator.methodcaller("istitle"), + operator.methodcaller("isnumeric"), + operator.methodcaller("isdecimal"), + operator.methodcaller("get_dummies"), + ], + ids=idfn, +) +def test_string_method(method): + s = pd.Series(["a1"]) + s.attrs = {"a": 1} + result = method(s.str) + assert result.attrs == {"a": 1} + + +@pytest.mark.parametrize( + "method", + [ + operator.methodcaller("to_period"), + operator.methodcaller("tz_localize", "CET"), + operator.methodcaller("normalize"), + operator.methodcaller("strftime", "%Y"), + operator.methodcaller("round", "h"), + operator.methodcaller("floor", "h"), + operator.methodcaller("ceil", "h"), + operator.methodcaller("month_name"), + operator.methodcaller("day_name"), + ], + ids=idfn, +) +def test_datetime_method(method): + s = pd.Series(pd.date_range("2000", periods=4)) + s.attrs = {"a": 1} + result = method(s.dt) + assert result.attrs == {"a": 1} + + +@pytest.mark.parametrize( + "attr", + [ + "date", + "time", + "timetz", + "year", + "month", + "day", + "hour", + "minute", + "second", + "microsecond", + "nanosecond", + "dayofweek", + "day_of_week", + "dayofyear", + "day_of_year", + "quarter", + "is_month_start", + "is_month_end", + "is_quarter_start", + "is_quarter_end", + "is_year_start", + "is_year_end", + "is_leap_year", + "daysinmonth", + "days_in_month", + ], +) +def test_datetime_property(attr): + s = pd.Series(pd.date_range("2000", periods=4)) + s.attrs = {"a": 1} + result = getattr(s.dt, attr) + assert result.attrs == {"a": 1} + + +@pytest.mark.parametrize( + "attr", ["days", "seconds", "microseconds", "nanoseconds", "components"] +) +def test_timedelta_property(attr): + s = pd.Series(pd.timedelta_range("2000", periods=4)) + s.attrs = {"a": 1} + result = getattr(s.dt, attr) + assert result.attrs == {"a": 1} + + +@pytest.mark.parametrize("method", [operator.methodcaller("total_seconds")]) +def test_timedelta_methods(method): + s = pd.Series(pd.timedelta_range("2000", periods=4)) + s.attrs = {"a": 1} + result = method(s.dt) + assert result.attrs == {"a": 1} + + +@pytest.mark.parametrize( + "method", + [ + operator.methodcaller("add_categories", ["c"]), + operator.methodcaller("as_ordered"), + operator.methodcaller("as_unordered"), + lambda x: getattr(x, "codes"), + operator.methodcaller("remove_categories", "a"), + operator.methodcaller("remove_unused_categories"), + operator.methodcaller("rename_categories", {"a": "A", "b": "B"}), + operator.methodcaller("reorder_categories", ["b", "a"]), + operator.methodcaller("set_categories", ["A", "B"]), + ], +) +@not_implemented_mark +def test_categorical_accessor(method): + s = pd.Series(["a", "b"], dtype="category") + s.attrs = {"a": 1} + result = method(s.cat) + assert result.attrs == {"a": 1} + + +# ---------------------------------------------------------------------------- +# Groupby + + +@pytest.mark.parametrize( + "obj", [pd.Series([0, 0]), pd.DataFrame({"A": [0, 1], "B": [1, 2]})] +) +@pytest.mark.parametrize( + "method", + [ + operator.methodcaller("sum"), + lambda x: x.apply(lambda y: y), + lambda x: x.agg("sum"), + lambda x: x.agg("mean"), + lambda x: x.agg("median"), + ], +) +def test_groupby_finalize(obj, method): + obj.attrs = {"a": 1} + result = method(obj.groupby([0, 0], group_keys=False)) + assert result.attrs == {"a": 1} + + +@pytest.mark.parametrize( + "obj", [pd.Series([0, 0]), pd.DataFrame({"A": [0, 1], "B": [1, 2]})] +) +@pytest.mark.parametrize( + "method", + [ + lambda x: x.agg(["sum", "count"]), + lambda x: x.agg("std"), + lambda x: x.agg("var"), + lambda x: x.agg("sem"), + lambda x: x.agg("size"), + lambda x: x.agg("ohlc"), + ], +) +@not_implemented_mark +def test_groupby_finalize_not_implemented(obj, method): + obj.attrs = {"a": 1} + result = method(obj.groupby([0, 0])) + assert result.attrs == {"a": 1} + + +def test_finalize_frame_series_name(): + # https://github.com/pandas-dev/pandas/pull/37186/files#r506978889 + # ensure we don't copy the column `name` to the Series. + df = pd.DataFrame({"name": [1, 2]}) + result = pd.Series([1, 2]).__finalize__(df) + assert result.name is None diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/generic/test_frame.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/generic/test_frame.py new file mode 100644 index 0000000000000000000000000000000000000000..fc7aa9e7b2c46362aa9b6a9ebfc4f663cfd61058 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/generic/test_frame.py @@ -0,0 +1,209 @@ +from copy import deepcopy +from operator import methodcaller + +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + DataFrame, + MultiIndex, + Series, + date_range, +) +import pandas._testing as tm + + +class TestDataFrame: + @pytest.mark.parametrize("func", ["_set_axis_name", "rename_axis"]) + def test_set_axis_name(self, func): + df = DataFrame([[1, 2], [3, 4]]) + + result = methodcaller(func, "foo")(df) + assert df.index.name is None + assert result.index.name == "foo" + + result = methodcaller(func, "cols", axis=1)(df) + assert df.columns.name is None + assert result.columns.name == "cols" + + @pytest.mark.parametrize("func", ["_set_axis_name", "rename_axis"]) + def test_set_axis_name_mi(self, func): + df = DataFrame( + np.empty((3, 3)), + index=MultiIndex.from_tuples([("A", x) for x in list("aBc")]), + columns=MultiIndex.from_tuples([("C", x) for x in list("xyz")]), + ) + + level_names = ["L1", "L2"] + + result = methodcaller(func, level_names)(df) + assert result.index.names == level_names + assert result.columns.names == [None, None] + + result = methodcaller(func, level_names, axis=1)(df) + assert result.columns.names == ["L1", "L2"] + assert result.index.names == [None, None] + + def test_nonzero_single_element(self): + # allow single item via bool method + msg_warn = ( + "DataFrame.bool is now deprecated and will be removed " + "in future version of pandas" + ) + df = DataFrame([[True]]) + df1 = DataFrame([[False]]) + with tm.assert_produces_warning(FutureWarning, match=msg_warn): + assert df.bool() + + with tm.assert_produces_warning(FutureWarning, match=msg_warn): + assert not df1.bool() + + df = DataFrame([[False, False]]) + msg_err = "The truth value of a DataFrame is ambiguous" + with pytest.raises(ValueError, match=msg_err): + bool(df) + + with tm.assert_produces_warning(FutureWarning, match=msg_warn): + with pytest.raises(ValueError, match=msg_err): + df.bool() + + def test_metadata_propagation_indiv_groupby(self): + # groupby + df = DataFrame( + { + "A": ["foo", "bar", "foo", "bar", "foo", "bar", "foo", "foo"], + "B": ["one", "one", "two", "three", "two", "two", "one", "three"], + "C": np.random.default_rng(2).standard_normal(8), + "D": np.random.default_rng(2).standard_normal(8), + } + ) + result = df.groupby("A").sum() + tm.assert_metadata_equivalent(df, result) + + def test_metadata_propagation_indiv_resample(self): + # resample + df = DataFrame( + np.random.default_rng(2).standard_normal((1000, 2)), + index=date_range("20130101", periods=1000, freq="s"), + ) + result = df.resample("1min") + tm.assert_metadata_equivalent(df, result) + + def test_metadata_propagation_indiv(self, monkeypatch): + # merging with override + # GH 6923 + + def finalize(self, other, method=None, **kwargs): + for name in self._metadata: + if method == "merge": + left, right = other.left, other.right + value = getattr(left, name, "") + "|" + getattr(right, name, "") + object.__setattr__(self, name, value) + elif method == "concat": + value = "+".join( + [getattr(o, name) for o in other.objs if getattr(o, name, None)] + ) + object.__setattr__(self, name, value) + else: + object.__setattr__(self, name, getattr(other, name, "")) + + return self + + with monkeypatch.context() as m: + m.setattr(DataFrame, "_metadata", ["filename"]) + m.setattr(DataFrame, "__finalize__", finalize) + + df1 = DataFrame( + np.random.default_rng(2).integers(0, 4, (3, 2)), columns=["a", "b"] + ) + df2 = DataFrame( + np.random.default_rng(2).integers(0, 4, (3, 2)), columns=["c", "d"] + ) + DataFrame._metadata = ["filename"] + df1.filename = "fname1.csv" + df2.filename = "fname2.csv" + + result = df1.merge(df2, left_on=["a"], right_on=["c"], how="inner") + assert result.filename == "fname1.csv|fname2.csv" + + # concat + # GH#6927 + df1 = DataFrame( + np.random.default_rng(2).integers(0, 4, (3, 2)), columns=list("ab") + ) + df1.filename = "foo" + + result = pd.concat([df1, df1]) + assert result.filename == "foo+foo" + + def test_set_attribute(self): + # Test for consistent setattr behavior when an attribute and a column + # have the same name (Issue #8994) + df = DataFrame({"x": [1, 2, 3]}) + + df.y = 2 + df["y"] = [2, 4, 6] + df.y = 5 + + assert df.y == 5 + tm.assert_series_equal(df["y"], Series([2, 4, 6], name="y")) + + def test_deepcopy_empty(self): + # This test covers empty frame copying with non-empty column sets + # as reported in issue GH15370 + empty_frame = DataFrame(data=[], index=[], columns=["A"]) + empty_frame_copy = deepcopy(empty_frame) + + tm.assert_frame_equal(empty_frame_copy, empty_frame) + + +# formerly in Generic but only test DataFrame +class TestDataFrame2: + @pytest.mark.parametrize("value", [1, "True", [1, 2, 3], 5.0]) + def test_validate_bool_args(self, value): + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + + msg = 'For argument "inplace" expected type bool, received type' + with pytest.raises(ValueError, match=msg): + df.copy().rename_axis(mapper={"a": "x", "b": "y"}, axis=1, inplace=value) + + with pytest.raises(ValueError, match=msg): + df.copy().drop("a", axis=1, inplace=value) + + with pytest.raises(ValueError, match=msg): + df.copy().fillna(value=0, inplace=value) + + with pytest.raises(ValueError, match=msg): + df.copy().replace(to_replace=1, value=7, inplace=value) + + with pytest.raises(ValueError, match=msg): + df.copy().interpolate(inplace=value) + + with pytest.raises(ValueError, match=msg): + df.copy()._where(cond=df.a > 2, inplace=value) + + with pytest.raises(ValueError, match=msg): + df.copy().mask(cond=df.a > 2, inplace=value) + + def test_unexpected_keyword(self): + # GH8597 + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 2)), columns=["jim", "joe"] + ) + ca = pd.Categorical([0, 0, 2, 2, 3, np.nan]) + ts = df["joe"].copy() + ts[2] = np.nan + + msg = "unexpected keyword" + with pytest.raises(TypeError, match=msg): + df.drop("joe", axis=1, in_place=True) + + with pytest.raises(TypeError, match=msg): + df.reindex([1, 0], inplace=True) + + with pytest.raises(TypeError, match=msg): + ca.fillna(0, inplace=True) + + with pytest.raises(TypeError, match=msg): + ts.fillna(0, in_place=True) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/generic/test_generic.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/generic/test_generic.py new file mode 100644 index 0000000000000000000000000000000000000000..6564e381af0ea9b821e44f780ce209936f9524dc --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/generic/test_generic.py @@ -0,0 +1,504 @@ +from copy import ( + copy, + deepcopy, +) + +import numpy as np +import pytest + +from pandas.core.dtypes.common import is_scalar + +from pandas import ( + DataFrame, + Index, + Series, + date_range, +) +import pandas._testing as tm + +# ---------------------------------------------------------------------- +# Generic types test cases + + +def construct(box, shape, value=None, dtype=None, **kwargs): + """ + construct an object for the given shape + if value is specified use that if its a scalar + if value is an array, repeat it as needed + """ + if isinstance(shape, int): + shape = tuple([shape] * box._AXIS_LEN) + if value is not None: + if is_scalar(value): + if value == "empty": + arr = None + dtype = np.float64 + + # remove the info axis + kwargs.pop(box._info_axis_name, None) + else: + arr = np.empty(shape, dtype=dtype) + arr.fill(value) + else: + fshape = np.prod(shape) + arr = value.ravel() + new_shape = fshape / arr.shape[0] + if fshape % arr.shape[0] != 0: + raise Exception("invalid value passed in construct") + + arr = np.repeat(arr, new_shape).reshape(shape) + else: + arr = np.random.default_rng(2).standard_normal(shape) + return box(arr, dtype=dtype, **kwargs) + + +class TestGeneric: + @pytest.mark.parametrize( + "func", + [ + str.lower, + {x: x.lower() for x in list("ABCD")}, + Series({x: x.lower() for x in list("ABCD")}), + ], + ) + def test_rename(self, frame_or_series, func): + # single axis + idx = list("ABCD") + + for axis in frame_or_series._AXIS_ORDERS: + kwargs = {axis: idx} + obj = construct(frame_or_series, 4, **kwargs) + + # rename a single axis + result = obj.rename(**{axis: func}) + expected = obj.copy() + setattr(expected, axis, list("abcd")) + tm.assert_equal(result, expected) + + def test_get_numeric_data(self, frame_or_series): + n = 4 + kwargs = { + frame_or_series._get_axis_name(i): list(range(n)) + for i in range(frame_or_series._AXIS_LEN) + } + + # get the numeric data + o = construct(frame_or_series, n, **kwargs) + result = o._get_numeric_data() + tm.assert_equal(result, o) + + # non-inclusion + result = o._get_bool_data() + expected = construct(frame_or_series, n, value="empty", **kwargs) + if isinstance(o, DataFrame): + # preserve columns dtype + expected.columns = o.columns[:0] + # https://github.com/pandas-dev/pandas/issues/50862 + tm.assert_equal(result.reset_index(drop=True), expected) + + # get the bool data + arr = np.array([True, True, False, True]) + o = construct(frame_or_series, n, value=arr, **kwargs) + result = o._get_numeric_data() + tm.assert_equal(result, o) + + def test_nonzero(self, frame_or_series): + # GH 4633 + # look at the boolean/nonzero behavior for objects + obj = construct(frame_or_series, shape=4) + msg = f"The truth value of a {frame_or_series.__name__} is ambiguous" + with pytest.raises(ValueError, match=msg): + bool(obj == 0) + with pytest.raises(ValueError, match=msg): + bool(obj == 1) + with pytest.raises(ValueError, match=msg): + bool(obj) + + obj = construct(frame_or_series, shape=4, value=1) + with pytest.raises(ValueError, match=msg): + bool(obj == 0) + with pytest.raises(ValueError, match=msg): + bool(obj == 1) + with pytest.raises(ValueError, match=msg): + bool(obj) + + obj = construct(frame_or_series, shape=4, value=np.nan) + with pytest.raises(ValueError, match=msg): + bool(obj == 0) + with pytest.raises(ValueError, match=msg): + bool(obj == 1) + with pytest.raises(ValueError, match=msg): + bool(obj) + + # empty + obj = construct(frame_or_series, shape=0) + with pytest.raises(ValueError, match=msg): + bool(obj) + + # invalid behaviors + + obj1 = construct(frame_or_series, shape=4, value=1) + obj2 = construct(frame_or_series, shape=4, value=1) + + with pytest.raises(ValueError, match=msg): + if obj1: + pass + + with pytest.raises(ValueError, match=msg): + obj1 and obj2 + with pytest.raises(ValueError, match=msg): + obj1 or obj2 + with pytest.raises(ValueError, match=msg): + not obj1 + + def test_frame_or_series_compound_dtypes(self, frame_or_series): + # see gh-5191 + # Compound dtypes should raise NotImplementedError. + + def f(dtype): + return construct(frame_or_series, shape=3, value=1, dtype=dtype) + + msg = ( + "compound dtypes are not implemented " + f"in the {frame_or_series.__name__} constructor" + ) + + with pytest.raises(NotImplementedError, match=msg): + f([("A", "datetime64[h]"), ("B", "str"), ("C", "int32")]) + + # these work (though results may be unexpected) + f("int64") + f("float64") + f("M8[ns]") + + def test_metadata_propagation(self, frame_or_series): + # check that the metadata matches up on the resulting ops + + o = construct(frame_or_series, shape=3) + o.name = "foo" + o2 = construct(frame_or_series, shape=3) + o2.name = "bar" + + # ---------- + # preserving + # ---------- + + # simple ops with scalars + for op in ["__add__", "__sub__", "__truediv__", "__mul__"]: + result = getattr(o, op)(1) + tm.assert_metadata_equivalent(o, result) + + # ops with like + for op in ["__add__", "__sub__", "__truediv__", "__mul__"]: + result = getattr(o, op)(o) + tm.assert_metadata_equivalent(o, result) + + # simple boolean + for op in ["__eq__", "__le__", "__ge__"]: + v1 = getattr(o, op)(o) + tm.assert_metadata_equivalent(o, v1) + tm.assert_metadata_equivalent(o, v1 & v1) + tm.assert_metadata_equivalent(o, v1 | v1) + + # combine_first + result = o.combine_first(o2) + tm.assert_metadata_equivalent(o, result) + + # --------------------------- + # non-preserving (by default) + # --------------------------- + + # add non-like + result = o + o2 + tm.assert_metadata_equivalent(result) + + # simple boolean + for op in ["__eq__", "__le__", "__ge__"]: + # this is a name matching op + v1 = getattr(o, op)(o) + v2 = getattr(o, op)(o2) + tm.assert_metadata_equivalent(v2) + tm.assert_metadata_equivalent(v1 & v2) + tm.assert_metadata_equivalent(v1 | v2) + + def test_size_compat(self, frame_or_series): + # GH8846 + # size property should be defined + + o = construct(frame_or_series, shape=10) + assert o.size == np.prod(o.shape) + assert o.size == 10 ** len(o.axes) + + def test_split_compat(self, frame_or_series): + # xref GH8846 + o = construct(frame_or_series, shape=10) + with tm.assert_produces_warning( + FutureWarning, match=".swapaxes' is deprecated", check_stacklevel=False + ): + assert len(np.array_split(o, 5)) == 5 + assert len(np.array_split(o, 2)) == 2 + + # See gh-12301 + def test_stat_unexpected_keyword(self, frame_or_series): + obj = construct(frame_or_series, 5) + starwars = "Star Wars" + errmsg = "unexpected keyword" + + with pytest.raises(TypeError, match=errmsg): + obj.max(epic=starwars) # stat_function + with pytest.raises(TypeError, match=errmsg): + obj.var(epic=starwars) # stat_function_ddof + with pytest.raises(TypeError, match=errmsg): + obj.sum(epic=starwars) # cum_function + with pytest.raises(TypeError, match=errmsg): + obj.any(epic=starwars) # logical_function + + @pytest.mark.parametrize("func", ["sum", "cumsum", "any", "var"]) + def test_api_compat(self, func, frame_or_series): + # GH 12021 + # compat for __name__, __qualname__ + + obj = construct(frame_or_series, 5) + f = getattr(obj, func) + assert f.__name__ == func + assert f.__qualname__.endswith(func) + + def test_stat_non_defaults_args(self, frame_or_series): + obj = construct(frame_or_series, 5) + out = np.array([0]) + errmsg = "the 'out' parameter is not supported" + + with pytest.raises(ValueError, match=errmsg): + obj.max(out=out) # stat_function + with pytest.raises(ValueError, match=errmsg): + obj.var(out=out) # stat_function_ddof + with pytest.raises(ValueError, match=errmsg): + obj.sum(out=out) # cum_function + with pytest.raises(ValueError, match=errmsg): + obj.any(out=out) # logical_function + + def test_truncate_out_of_bounds(self, frame_or_series): + # GH11382 + + # small + shape = [2000] + ([1] * (frame_or_series._AXIS_LEN - 1)) + small = construct(frame_or_series, shape, dtype="int8", value=1) + tm.assert_equal(small.truncate(), small) + tm.assert_equal(small.truncate(before=0, after=3e3), small) + tm.assert_equal(small.truncate(before=-1, after=2e3), small) + + # big + shape = [2_000_000] + ([1] * (frame_or_series._AXIS_LEN - 1)) + big = construct(frame_or_series, shape, dtype="int8", value=1) + tm.assert_equal(big.truncate(), big) + tm.assert_equal(big.truncate(before=0, after=3e6), big) + tm.assert_equal(big.truncate(before=-1, after=2e6), big) + + @pytest.mark.parametrize( + "func", + [copy, deepcopy, lambda x: x.copy(deep=False), lambda x: x.copy(deep=True)], + ) + @pytest.mark.parametrize("shape", [0, 1, 2]) + def test_copy_and_deepcopy(self, frame_or_series, shape, func): + # GH 15444 + obj = construct(frame_or_series, shape) + obj_copy = func(obj) + assert obj_copy is not obj + tm.assert_equal(obj_copy, obj) + + def test_data_deprecated(self, frame_or_series): + obj = frame_or_series() + msg = "(Series|DataFrame)._data is deprecated" + with tm.assert_produces_warning(DeprecationWarning, match=msg): + mgr = obj._data + assert mgr is obj._mgr + + +class TestNDFrame: + # tests that don't fit elsewhere + + @pytest.mark.parametrize( + "ser", + [ + Series(range(10), dtype=np.float64), + Series([str(i) for i in range(10)], dtype=object), + ], + ) + def test_squeeze_series_noop(self, ser): + # noop + tm.assert_series_equal(ser.squeeze(), ser) + + def test_squeeze_frame_noop(self): + # noop + df = DataFrame(np.eye(2)) + tm.assert_frame_equal(df.squeeze(), df) + + def test_squeeze_frame_reindex(self): + # squeezing + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 4)), + columns=Index(list("ABCD"), dtype=object), + index=date_range("2000-01-01", periods=10, freq="B"), + ).reindex(columns=["A"]) + tm.assert_series_equal(df.squeeze(), df["A"]) + + def test_squeeze_0_len_dim(self): + # don't fail with 0 length dimensions GH11229 & GH8999 + empty_series = Series([], name="five", dtype=np.float64) + empty_frame = DataFrame([empty_series]) + tm.assert_series_equal(empty_series, empty_series.squeeze()) + tm.assert_series_equal(empty_series, empty_frame.squeeze()) + + def test_squeeze_axis(self): + # axis argument + df = DataFrame( + np.random.default_rng(2).standard_normal((1, 4)), + columns=Index(list("ABCD"), dtype=object), + index=date_range("2000-01-01", periods=1, freq="B"), + ).iloc[:, :1] + assert df.shape == (1, 1) + tm.assert_series_equal(df.squeeze(axis=0), df.iloc[0]) + tm.assert_series_equal(df.squeeze(axis="index"), df.iloc[0]) + tm.assert_series_equal(df.squeeze(axis=1), df.iloc[:, 0]) + tm.assert_series_equal(df.squeeze(axis="columns"), df.iloc[:, 0]) + assert df.squeeze() == df.iloc[0, 0] + msg = "No axis named 2 for object type DataFrame" + with pytest.raises(ValueError, match=msg): + df.squeeze(axis=2) + msg = "No axis named x for object type DataFrame" + with pytest.raises(ValueError, match=msg): + df.squeeze(axis="x") + + def test_squeeze_axis_len_3(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((3, 4)), + columns=Index(list("ABCD"), dtype=object), + index=date_range("2000-01-01", periods=3, freq="B"), + ) + tm.assert_frame_equal(df.squeeze(axis=0), df) + + def test_numpy_squeeze(self): + s = Series(range(2), dtype=np.float64) + tm.assert_series_equal(np.squeeze(s), s) + + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 4)), + columns=Index(list("ABCD"), dtype=object), + index=date_range("2000-01-01", periods=10, freq="B"), + ).reindex(columns=["A"]) + tm.assert_series_equal(np.squeeze(df), df["A"]) + + @pytest.mark.parametrize( + "ser", + [ + Series(range(10), dtype=np.float64), + Series([str(i) for i in range(10)], dtype=object), + ], + ) + def test_transpose_series(self, ser): + # calls implementation in pandas/core/base.py + tm.assert_series_equal(ser.transpose(), ser) + + def test_transpose_frame(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 4)), + columns=Index(list("ABCD"), dtype=object), + index=date_range("2000-01-01", periods=10, freq="B"), + ) + tm.assert_frame_equal(df.transpose().transpose(), df) + + def test_numpy_transpose(self, frame_or_series): + obj = DataFrame( + np.random.default_rng(2).standard_normal((10, 4)), + columns=Index(list("ABCD"), dtype=object), + index=date_range("2000-01-01", periods=10, freq="B"), + ) + obj = tm.get_obj(obj, frame_or_series) + + if frame_or_series is Series: + # 1D -> np.transpose is no-op + tm.assert_series_equal(np.transpose(obj), obj) + + # round-trip preserved + tm.assert_equal(np.transpose(np.transpose(obj)), obj) + + msg = "the 'axes' parameter is not supported" + with pytest.raises(ValueError, match=msg): + np.transpose(obj, axes=1) + + @pytest.mark.parametrize( + "ser", + [ + Series(range(10), dtype=np.float64), + Series([str(i) for i in range(10)], dtype=object), + ], + ) + def test_take_series(self, ser): + indices = [1, 5, -2, 6, 3, -1] + out = ser.take(indices) + expected = Series( + data=ser.values.take(indices), + index=ser.index.take(indices), + dtype=ser.dtype, + ) + tm.assert_series_equal(out, expected) + + def test_take_frame(self): + indices = [1, 5, -2, 6, 3, -1] + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 4)), + columns=Index(list("ABCD"), dtype=object), + index=date_range("2000-01-01", periods=10, freq="B"), + ) + out = df.take(indices) + expected = DataFrame( + data=df.values.take(indices, axis=0), + index=df.index.take(indices), + columns=df.columns, + ) + tm.assert_frame_equal(out, expected) + + def test_take_invalid_kwargs(self, frame_or_series): + indices = [-3, 2, 0, 1] + + obj = DataFrame(range(5)) + obj = tm.get_obj(obj, frame_or_series) + + msg = r"take\(\) got an unexpected keyword argument 'foo'" + with pytest.raises(TypeError, match=msg): + obj.take(indices, foo=2) + + msg = "the 'out' parameter is not supported" + with pytest.raises(ValueError, match=msg): + obj.take(indices, out=indices) + + msg = "the 'mode' parameter is not supported" + with pytest.raises(ValueError, match=msg): + obj.take(indices, mode="clip") + + def test_axis_classmethods(self, frame_or_series): + box = frame_or_series + obj = box(dtype=object) + values = box._AXIS_TO_AXIS_NUMBER.keys() + for v in values: + assert obj._get_axis_number(v) == box._get_axis_number(v) + assert obj._get_axis_name(v) == box._get_axis_name(v) + assert obj._get_block_manager_axis(v) == box._get_block_manager_axis(v) + + def test_flags_identity(self, frame_or_series): + obj = Series([1, 2]) + if frame_or_series is DataFrame: + obj = obj.to_frame() + + assert obj.flags is obj.flags + obj2 = obj.copy() + assert obj2.flags is not obj.flags + + def test_bool_dep(self) -> None: + # GH-51749 + msg_warn = ( + "DataFrame.bool is now deprecated and will be removed " + "in future version of pandas" + ) + with tm.assert_produces_warning(FutureWarning, match=msg_warn): + DataFrame({"col": [False]}).bool() diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/generic/test_label_or_level_utils.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/generic/test_label_or_level_utils.py new file mode 100644 index 0000000000000000000000000000000000000000..97be46f716d7daa98c1c1ebab04e1e6abb3a55bc --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/generic/test_label_or_level_utils.py @@ -0,0 +1,336 @@ +import pytest + +from pandas.core.dtypes.missing import array_equivalent + +import pandas as pd + + +# Fixtures +# ======== +@pytest.fixture +def df(): + """DataFrame with columns 'L1', 'L2', and 'L3'""" + return pd.DataFrame({"L1": [1, 2, 3], "L2": [11, 12, 13], "L3": ["A", "B", "C"]}) + + +@pytest.fixture(params=[[], ["L1"], ["L1", "L2"], ["L1", "L2", "L3"]]) +def df_levels(request, df): + """DataFrame with columns or index levels 'L1', 'L2', and 'L3'""" + levels = request.param + + if levels: + df = df.set_index(levels) + + return df + + +@pytest.fixture +def df_ambig(df): + """DataFrame with levels 'L1' and 'L2' and labels 'L1' and 'L3'""" + df = df.set_index(["L1", "L2"]) + + df["L1"] = df["L3"] + + return df + + +@pytest.fixture +def df_duplabels(df): + """DataFrame with level 'L1' and labels 'L2', 'L3', and 'L2'""" + df = df.set_index(["L1"]) + df = pd.concat([df, df["L2"]], axis=1) + + return df + + +# Test is label/level reference +# ============================= +def get_labels_levels(df_levels): + expected_labels = list(df_levels.columns) + expected_levels = [name for name in df_levels.index.names if name is not None] + return expected_labels, expected_levels + + +def assert_label_reference(frame, labels, axis): + for label in labels: + assert frame._is_label_reference(label, axis=axis) + assert not frame._is_level_reference(label, axis=axis) + assert frame._is_label_or_level_reference(label, axis=axis) + + +def assert_level_reference(frame, levels, axis): + for level in levels: + assert frame._is_level_reference(level, axis=axis) + assert not frame._is_label_reference(level, axis=axis) + assert frame._is_label_or_level_reference(level, axis=axis) + + +# DataFrame +# --------- +def test_is_level_or_label_reference_df_simple(df_levels, axis): + axis = df_levels._get_axis_number(axis) + # Compute expected labels and levels + expected_labels, expected_levels = get_labels_levels(df_levels) + + # Transpose frame if axis == 1 + if axis == 1: + df_levels = df_levels.T + + # Perform checks + assert_level_reference(df_levels, expected_levels, axis=axis) + assert_label_reference(df_levels, expected_labels, axis=axis) + + +def test_is_level_reference_df_ambig(df_ambig, axis): + axis = df_ambig._get_axis_number(axis) + + # Transpose frame if axis == 1 + if axis == 1: + df_ambig = df_ambig.T + + # df has both an on-axis level and off-axis label named L1 + # Therefore L1 should reference the label, not the level + assert_label_reference(df_ambig, ["L1"], axis=axis) + + # df has an on-axis level named L2 and it is not ambiguous + # Therefore L2 is an level reference + assert_level_reference(df_ambig, ["L2"], axis=axis) + + # df has a column named L3 and it not an level reference + assert_label_reference(df_ambig, ["L3"], axis=axis) + + +# Series +# ------ +def test_is_level_reference_series_simple_axis0(df): + # Make series with L1 as index + s = df.set_index("L1").L2 + assert_level_reference(s, ["L1"], axis=0) + assert not s._is_level_reference("L2") + + # Make series with L1 and L2 as index + s = df.set_index(["L1", "L2"]).L3 + assert_level_reference(s, ["L1", "L2"], axis=0) + assert not s._is_level_reference("L3") + + +def test_is_level_reference_series_axis1_error(df): + # Make series with L1 as index + s = df.set_index("L1").L2 + + with pytest.raises(ValueError, match="No axis named 1"): + s._is_level_reference("L1", axis=1) + + +# Test _check_label_or_level_ambiguity_df +# ======================================= + + +# DataFrame +# --------- +def test_check_label_or_level_ambiguity_df(df_ambig, axis): + axis = df_ambig._get_axis_number(axis) + # Transpose frame if axis == 1 + if axis == 1: + df_ambig = df_ambig.T + msg = "'L1' is both a column level and an index label" + + else: + msg = "'L1' is both an index level and a column label" + # df_ambig has both an on-axis level and off-axis label named L1 + # Therefore, L1 is ambiguous. + with pytest.raises(ValueError, match=msg): + df_ambig._check_label_or_level_ambiguity("L1", axis=axis) + + # df_ambig has an on-axis level named L2,, and it is not ambiguous. + df_ambig._check_label_or_level_ambiguity("L2", axis=axis) + + # df_ambig has an off-axis label named L3, and it is not ambiguous + assert not df_ambig._check_label_or_level_ambiguity("L3", axis=axis) + + +# Series +# ------ +def test_check_label_or_level_ambiguity_series(df): + # A series has no columns and therefore references are never ambiguous + + # Make series with L1 as index + s = df.set_index("L1").L2 + s._check_label_or_level_ambiguity("L1", axis=0) + s._check_label_or_level_ambiguity("L2", axis=0) + + # Make series with L1 and L2 as index + s = df.set_index(["L1", "L2"]).L3 + s._check_label_or_level_ambiguity("L1", axis=0) + s._check_label_or_level_ambiguity("L2", axis=0) + s._check_label_or_level_ambiguity("L3", axis=0) + + +def test_check_label_or_level_ambiguity_series_axis1_error(df): + # Make series with L1 as index + s = df.set_index("L1").L2 + + with pytest.raises(ValueError, match="No axis named 1"): + s._check_label_or_level_ambiguity("L1", axis=1) + + +# Test _get_label_or_level_values +# =============================== +def assert_label_values(frame, labels, axis): + axis = frame._get_axis_number(axis) + for label in labels: + if axis == 0: + expected = frame[label]._values + else: + expected = frame.loc[label]._values + + result = frame._get_label_or_level_values(label, axis=axis) + assert array_equivalent(expected, result) + + +def assert_level_values(frame, levels, axis): + axis = frame._get_axis_number(axis) + for level in levels: + if axis == 0: + expected = frame.index.get_level_values(level=level)._values + else: + expected = frame.columns.get_level_values(level=level)._values + + result = frame._get_label_or_level_values(level, axis=axis) + assert array_equivalent(expected, result) + + +# DataFrame +# --------- +def test_get_label_or_level_values_df_simple(df_levels, axis): + # Compute expected labels and levels + expected_labels, expected_levels = get_labels_levels(df_levels) + + axis = df_levels._get_axis_number(axis) + # Transpose frame if axis == 1 + if axis == 1: + df_levels = df_levels.T + + # Perform checks + assert_label_values(df_levels, expected_labels, axis=axis) + assert_level_values(df_levels, expected_levels, axis=axis) + + +def test_get_label_or_level_values_df_ambig(df_ambig, axis): + axis = df_ambig._get_axis_number(axis) + # Transpose frame if axis == 1 + if axis == 1: + df_ambig = df_ambig.T + + # df has an on-axis level named L2, and it is not ambiguous. + assert_level_values(df_ambig, ["L2"], axis=axis) + + # df has an off-axis label named L3, and it is not ambiguous. + assert_label_values(df_ambig, ["L3"], axis=axis) + + +def test_get_label_or_level_values_df_duplabels(df_duplabels, axis): + axis = df_duplabels._get_axis_number(axis) + # Transpose frame if axis == 1 + if axis == 1: + df_duplabels = df_duplabels.T + + # df has unambiguous level 'L1' + assert_level_values(df_duplabels, ["L1"], axis=axis) + + # df has unique label 'L3' + assert_label_values(df_duplabels, ["L3"], axis=axis) + + # df has duplicate labels 'L2' + if axis == 0: + expected_msg = "The column label 'L2' is not unique" + else: + expected_msg = "The index label 'L2' is not unique" + + with pytest.raises(ValueError, match=expected_msg): + assert_label_values(df_duplabels, ["L2"], axis=axis) + + +# Series +# ------ +def test_get_label_or_level_values_series_axis0(df): + # Make series with L1 as index + s = df.set_index("L1").L2 + assert_level_values(s, ["L1"], axis=0) + + # Make series with L1 and L2 as index + s = df.set_index(["L1", "L2"]).L3 + assert_level_values(s, ["L1", "L2"], axis=0) + + +def test_get_label_or_level_values_series_axis1_error(df): + # Make series with L1 as index + s = df.set_index("L1").L2 + + with pytest.raises(ValueError, match="No axis named 1"): + s._get_label_or_level_values("L1", axis=1) + + +# Test _drop_labels_or_levels +# =========================== +def assert_labels_dropped(frame, labels, axis): + axis = frame._get_axis_number(axis) + for label in labels: + df_dropped = frame._drop_labels_or_levels(label, axis=axis) + + if axis == 0: + assert label in frame.columns + assert label not in df_dropped.columns + else: + assert label in frame.index + assert label not in df_dropped.index + + +def assert_levels_dropped(frame, levels, axis): + axis = frame._get_axis_number(axis) + for level in levels: + df_dropped = frame._drop_labels_or_levels(level, axis=axis) + + if axis == 0: + assert level in frame.index.names + assert level not in df_dropped.index.names + else: + assert level in frame.columns.names + assert level not in df_dropped.columns.names + + +# DataFrame +# --------- +def test_drop_labels_or_levels_df(df_levels, axis): + # Compute expected labels and levels + expected_labels, expected_levels = get_labels_levels(df_levels) + + axis = df_levels._get_axis_number(axis) + # Transpose frame if axis == 1 + if axis == 1: + df_levels = df_levels.T + + # Perform checks + assert_labels_dropped(df_levels, expected_labels, axis=axis) + assert_levels_dropped(df_levels, expected_levels, axis=axis) + + with pytest.raises(ValueError, match="not valid labels or levels"): + df_levels._drop_labels_or_levels("L4", axis=axis) + + +# Series +# ------ +def test_drop_labels_or_levels_series(df): + # Make series with L1 as index + s = df.set_index("L1").L2 + assert_levels_dropped(s, ["L1"], axis=0) + + with pytest.raises(ValueError, match="not valid labels or levels"): + s._drop_labels_or_levels("L4", axis=0) + + # Make series with L1 and L2 as index + s = df.set_index(["L1", "L2"]).L3 + assert_levels_dropped(s, ["L1", "L2"], axis=0) + + with pytest.raises(ValueError, match="not valid labels or levels"): + s._drop_labels_or_levels("L4", axis=0) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/generic/test_series.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/generic/test_series.py new file mode 100644 index 0000000000000000000000000000000000000000..3648961eb3808a316b2a23d3d720fdd26fe7fd06 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/generic/test_series.py @@ -0,0 +1,159 @@ +from operator import methodcaller + +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + MultiIndex, + Series, + date_range, +) +import pandas._testing as tm + + +class TestSeries: + @pytest.mark.parametrize("func", ["rename_axis", "_set_axis_name"]) + def test_set_axis_name_mi(self, func): + ser = Series( + [11, 21, 31], + index=MultiIndex.from_tuples( + [("A", x) for x in ["a", "B", "c"]], names=["l1", "l2"] + ), + ) + + result = methodcaller(func, ["L1", "L2"])(ser) + assert ser.index.name is None + assert ser.index.names == ["l1", "l2"] + assert result.index.name is None + assert result.index.names, ["L1", "L2"] + + def test_set_axis_name_raises(self): + ser = Series([1]) + msg = "No axis named 1 for object type Series" + with pytest.raises(ValueError, match=msg): + ser._set_axis_name(name="a", axis=1) + + def test_get_bool_data_preserve_dtype(self): + ser = Series([True, False, True]) + result = ser._get_bool_data() + tm.assert_series_equal(result, ser) + + def test_nonzero_single_element(self): + # allow single item via bool method + msg_warn = ( + "Series.bool is now deprecated and will be removed " + "in future version of pandas" + ) + ser = Series([True]) + ser1 = Series([False]) + with tm.assert_produces_warning(FutureWarning, match=msg_warn): + assert ser.bool() + with tm.assert_produces_warning(FutureWarning, match=msg_warn): + assert not ser1.bool() + + @pytest.mark.parametrize("data", [np.nan, pd.NaT, True, False]) + def test_nonzero_single_element_raise_1(self, data): + # single item nan to raise + series = Series([data]) + + msg = "The truth value of a Series is ambiguous" + with pytest.raises(ValueError, match=msg): + bool(series) + + @pytest.mark.parametrize("data", [np.nan, pd.NaT]) + def test_nonzero_single_element_raise_2(self, data): + msg_warn = ( + "Series.bool is now deprecated and will be removed " + "in future version of pandas" + ) + msg_err = "bool cannot act on a non-boolean single element Series" + series = Series([data]) + with tm.assert_produces_warning(FutureWarning, match=msg_warn): + with pytest.raises(ValueError, match=msg_err): + series.bool() + + @pytest.mark.parametrize("data", [(True, True), (False, False)]) + def test_nonzero_multiple_element_raise(self, data): + # multiple bool are still an error + msg_warn = ( + "Series.bool is now deprecated and will be removed " + "in future version of pandas" + ) + msg_err = "The truth value of a Series is ambiguous" + series = Series([data]) + with pytest.raises(ValueError, match=msg_err): + bool(series) + with tm.assert_produces_warning(FutureWarning, match=msg_warn): + with pytest.raises(ValueError, match=msg_err): + series.bool() + + @pytest.mark.parametrize("data", [1, 0, "a", 0.0]) + def test_nonbool_single_element_raise(self, data): + # single non-bool are an error + msg_warn = ( + "Series.bool is now deprecated and will be removed " + "in future version of pandas" + ) + msg_err1 = "The truth value of a Series is ambiguous" + msg_err2 = "bool cannot act on a non-boolean single element Series" + series = Series([data]) + with pytest.raises(ValueError, match=msg_err1): + bool(series) + with tm.assert_produces_warning(FutureWarning, match=msg_warn): + with pytest.raises(ValueError, match=msg_err2): + series.bool() + + def test_metadata_propagation_indiv_resample(self): + # resample + ts = Series( + np.random.default_rng(2).random(1000), + index=date_range("20130101", periods=1000, freq="s"), + name="foo", + ) + result = ts.resample("1min").mean() + tm.assert_metadata_equivalent(ts, result) + + result = ts.resample("1min").min() + tm.assert_metadata_equivalent(ts, result) + + result = ts.resample("1min").apply(lambda x: x.sum()) + tm.assert_metadata_equivalent(ts, result) + + def test_metadata_propagation_indiv(self, monkeypatch): + # check that the metadata matches up on the resulting ops + + ser = Series(range(3), range(3)) + ser.name = "foo" + ser2 = Series(range(3), range(3)) + ser2.name = "bar" + + result = ser.T + tm.assert_metadata_equivalent(ser, result) + + def finalize(self, other, method=None, **kwargs): + for name in self._metadata: + if method == "concat" and name == "filename": + value = "+".join( + [ + getattr(obj, name) + for obj in other.objs + if getattr(obj, name, None) + ] + ) + object.__setattr__(self, name, value) + else: + object.__setattr__(self, name, getattr(other, name, None)) + + return self + + with monkeypatch.context() as m: + m.setattr(Series, "_metadata", ["name", "filename"]) + m.setattr(Series, "__finalize__", finalize) + + ser.filename = "foo" + ser2.filename = "bar" + + result = pd.concat([ser, ser2]) + assert result.filename == "foo+bar" + assert result.name is None diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/generic/test_to_xarray.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/generic/test_to_xarray.py new file mode 100644 index 0000000000000000000000000000000000000000..9b589c9348c35f763da12bff03e196062d11564b --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/generic/test_to_xarray.py @@ -0,0 +1,144 @@ +import numpy as np +import pytest + +from pandas import ( + Categorical, + DataFrame, + MultiIndex, + Series, + StringDtype, + date_range, +) +import pandas._testing as tm +from pandas.util.version import Version + +xarray = pytest.importorskip("xarray") + + +class TestDataFrameToXArray: + @pytest.fixture + def df(self): + return DataFrame( + { + "a": list("abcd"), + "b": list(range(1, 5)), + "c": np.arange(3, 7).astype("u1"), + "d": np.arange(4.0, 8.0, dtype="float64"), + "e": [True, False, True, False], + "f": Categorical(list("abcd")), + "g": date_range("20130101", periods=4), + "h": date_range("20130101", periods=4, tz="US/Eastern"), + } + ) + + def test_to_xarray_index_types(self, index_flat, df, using_infer_string): + index = index_flat + # MultiIndex is tested in test_to_xarray_with_multiindex + if len(index) == 0: + pytest.skip("Test doesn't make sense for empty index") + + from xarray import Dataset + + df.index = index[:4] + df.index.name = "foo" + df.columns.name = "bar" + result = df.to_xarray() + assert result.sizes["foo"] == 4 + assert len(result.coords) == 1 + assert len(result.data_vars) == 8 + tm.assert_almost_equal(list(result.coords.keys()), ["foo"]) + assert isinstance(result, Dataset) + + # idempotency + # datetimes w/tz are preserved + # column names are lost + expected = df.copy() + expected["f"] = expected["f"].astype( + object if not using_infer_string else "str" + ) + expected.columns.name = None + tm.assert_frame_equal(result.to_dataframe(), expected) + + def test_to_xarray_empty(self, df): + from xarray import Dataset + + df.index.name = "foo" + result = df[0:0].to_xarray() + assert result.sizes["foo"] == 0 + assert isinstance(result, Dataset) + + def test_to_xarray_with_multiindex(self, df, using_infer_string): + from xarray import Dataset + + # MultiIndex + df.index = MultiIndex.from_product([["a"], range(4)], names=["one", "two"]) + result = df.to_xarray() + assert result.sizes["one"] == 1 + assert result.sizes["two"] == 4 + assert len(result.coords) == 2 + assert len(result.data_vars) == 8 + tm.assert_almost_equal(list(result.coords.keys()), ["one", "two"]) + assert isinstance(result, Dataset) + + result = result.to_dataframe() + expected = df.copy() + expected["f"] = expected["f"].astype( + object if not using_infer_string else "str" + ) + expected.columns.name = None + tm.assert_frame_equal(result, expected) + + +class TestSeriesToXArray: + def test_to_xarray_index_types(self, index_flat, request): + index = index_flat + if ( + isinstance(index.dtype, StringDtype) + and index.dtype.storage == "pyarrow" + and Version(xarray.__version__) > Version("2024.9.0") + and Version(xarray.__version__) < Version("2025.6.0") + ): + request.applymarker( + pytest.mark.xfail( + reason="xarray calling reshape of ArrowExtensionArray", + raises=NotImplementedError, + ) + ) + # MultiIndex is tested in test_to_xarray_with_multiindex + + from xarray import DataArray + + ser = Series(range(len(index)), index=index, dtype="int64") + ser.index.name = "foo" + result = ser.to_xarray() + repr(result) + assert len(result) == len(index) + assert len(result.coords) == 1 + tm.assert_almost_equal(list(result.coords.keys()), ["foo"]) + assert isinstance(result, DataArray) + + # idempotency + tm.assert_series_equal(result.to_series(), ser) + + def test_to_xarray_empty(self): + from xarray import DataArray + + ser = Series([], dtype=object) + ser.index.name = "foo" + result = ser.to_xarray() + assert len(result) == 0 + assert len(result.coords) == 1 + tm.assert_almost_equal(list(result.coords.keys()), ["foo"]) + assert isinstance(result, DataArray) + + def test_to_xarray_with_multiindex(self): + from xarray import DataArray + + mi = MultiIndex.from_product([["a", "b"], range(3)], names=["one", "two"]) + ser = Series(range(6), dtype="int64", index=mi) + result = ser.to_xarray() + assert len(result) == 2 + tm.assert_almost_equal(list(result.coords.keys()), ["one", "two"]) + assert isinstance(result, DataArray) + res = result.to_series() + tm.assert_series_equal(res, ser) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..446d9da4377712b073d76dac7672dcf1de00cf04 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/__init__.py @@ -0,0 +1,25 @@ +def get_groupby_method_args(name, obj): + """ + Get required arguments for a groupby method. + + When parametrizing a test over groupby methods (e.g. "sum", "mean", "fillna"), + it is often the case that arguments are required for certain methods. + + Parameters + ---------- + name: str + Name of the method. + obj: Series or DataFrame + pandas object that is being grouped. + + Returns + ------- + A tuple of required arguments for the method. + """ + if name in ("nth", "fillna", "take"): + return (0,) + if name == "quantile": + return (0.5,) + if name == "corrwith": + return (obj,) + return () diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/aggregate/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/aggregate/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/aggregate/test_aggregate.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/aggregate/test_aggregate.py new file mode 100644 index 0000000000000000000000000000000000000000..f02a828fe8d1735f7014dc3437a492bb1f682506 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/aggregate/test_aggregate.py @@ -0,0 +1,1672 @@ +""" +test .agg behavior / note that .apply is tested generally in test_groupby.py +""" +import datetime +import functools +from functools import partial +import re + +import numpy as np +import pytest + +from pandas.errors import SpecificationError + +from pandas.core.dtypes.common import is_integer_dtype + +import pandas as pd +from pandas import ( + DataFrame, + Index, + MultiIndex, + Series, + concat, + to_datetime, +) +import pandas._testing as tm +from pandas.core.groupby.grouper import Grouping + + +def test_groupby_agg_no_extra_calls(): + # GH#31760 + df = DataFrame({"key": ["a", "b", "c", "c"], "value": [1, 2, 3, 4]}) + gb = df.groupby("key")["value"] + + def dummy_func(x): + assert len(x) != 0 + return x.sum() + + gb.agg(dummy_func) + + +def test_agg_regression1(tsframe): + grouped = tsframe.groupby([lambda x: x.year, lambda x: x.month]) + result = grouped.agg("mean") + expected = grouped.mean() + tm.assert_frame_equal(result, expected) + + +def test_agg_must_agg(df): + grouped = df.groupby("A")["C"] + + msg = "Must produce aggregated value" + with pytest.raises(Exception, match=msg): + grouped.agg(lambda x: x.describe()) + with pytest.raises(Exception, match=msg): + grouped.agg(lambda x: x.index[:2]) + + +def test_agg_ser_multi_key(df): + f = lambda x: x.sum() + results = df.C.groupby([df.A, df.B]).aggregate(f) + expected = df.groupby(["A", "B"]).sum()["C"] + tm.assert_series_equal(results, expected) + + +def test_groupby_aggregation_mixed_dtype(): + # GH 6212 + expected = DataFrame( + { + "v1": [5, 5, 7, np.nan, 3, 3, 4, 1], + "v2": [55, 55, 77, np.nan, 33, 33, 44, 11], + }, + index=MultiIndex.from_tuples( + [ + (1, 95), + (1, 99), + (2, 95), + (2, 99), + ("big", "damp"), + ("blue", "dry"), + ("red", "red"), + ("red", "wet"), + ], + names=["by1", "by2"], + ), + ) + + df = DataFrame( + { + "v1": [1, 3, 5, 7, 8, 3, 5, np.nan, 4, 5, 7, 9], + "v2": [11, 33, 55, 77, 88, 33, 55, np.nan, 44, 55, 77, 99], + "by1": ["red", "blue", 1, 2, np.nan, "big", 1, 2, "red", 1, np.nan, 12], + "by2": [ + "wet", + "dry", + 99, + 95, + np.nan, + "damp", + 95, + 99, + "red", + 99, + np.nan, + np.nan, + ], + } + ) + + g = df.groupby(["by1", "by2"]) + result = g[["v1", "v2"]].mean() + tm.assert_frame_equal(result, expected) + + +def test_groupby_aggregation_multi_level_column(): + # GH 29772 + lst = [ + [True, True, True, False], + [True, False, np.nan, False], + [True, True, np.nan, False], + [True, True, np.nan, False], + ] + df = DataFrame( + data=lst, + columns=MultiIndex.from_tuples([("A", 0), ("A", 1), ("B", 0), ("B", 1)]), + ) + + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + gb = df.groupby(level=1, axis=1) + result = gb.sum(numeric_only=False) + expected = DataFrame({0: [2.0, True, True, True], 1: [1, 0, 1, 1]}) + + tm.assert_frame_equal(result, expected) + + +def test_agg_apply_corner(ts, tsframe): + # nothing to group, all NA + grouped = ts.groupby(ts * np.nan, group_keys=False) + assert ts.dtype == np.float64 + + # groupby float64 values results in a float64 Index + exp = Series([], dtype=np.float64, index=Index([], dtype=np.float64)) + tm.assert_series_equal(grouped.sum(), exp) + tm.assert_series_equal(grouped.agg("sum"), exp) + tm.assert_series_equal(grouped.apply("sum"), exp, check_index_type=False) + + # DataFrame + grouped = tsframe.groupby(tsframe["A"] * np.nan, group_keys=False) + exp_df = DataFrame( + columns=tsframe.columns, + dtype=float, + index=Index([], name="A", dtype=np.float64), + ) + tm.assert_frame_equal(grouped.sum(), exp_df) + tm.assert_frame_equal(grouped.agg("sum"), exp_df) + + msg = "The behavior of DataFrame.sum with axis=None is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg, check_stacklevel=False): + res = grouped.apply(np.sum) + tm.assert_frame_equal(res, exp_df) + + +def test_agg_grouping_is_list_tuple(ts): + df = DataFrame( + np.random.default_rng(2).standard_normal((30, 4)), + columns=Index(list("ABCD"), dtype=object), + index=pd.date_range("2000-01-01", periods=30, freq="B"), + ) + + grouped = df.groupby(lambda x: x.year) + grouper = grouped._grouper.groupings[0].grouping_vector + grouped._grouper.groupings[0] = Grouping(ts.index, list(grouper)) + + result = grouped.agg("mean") + expected = grouped.mean() + tm.assert_frame_equal(result, expected) + + grouped._grouper.groupings[0] = Grouping(ts.index, tuple(grouper)) + + result = grouped.agg("mean") + expected = grouped.mean() + tm.assert_frame_equal(result, expected) + + +def test_agg_python_multiindex(multiindex_dataframe_random_data): + grouped = multiindex_dataframe_random_data.groupby(["A", "B"]) + + result = grouped.agg("mean") + expected = grouped.mean() + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "groupbyfunc", [lambda x: x.weekday(), [lambda x: x.month, lambda x: x.weekday()]] +) +def test_aggregate_str_func(tsframe, groupbyfunc): + grouped = tsframe.groupby(groupbyfunc) + + # single series + result = grouped["A"].agg("std") + expected = grouped["A"].std() + tm.assert_series_equal(result, expected) + + # group frame by function name + result = grouped.aggregate("var") + expected = grouped.var() + tm.assert_frame_equal(result, expected) + + # group frame by function dict + result = grouped.agg({"A": "var", "B": "std", "C": "mean", "D": "sem"}) + expected = DataFrame( + { + "A": grouped["A"].var(), + "B": grouped["B"].std(), + "C": grouped["C"].mean(), + "D": grouped["D"].sem(), + } + ) + tm.assert_frame_equal(result, expected) + + +def test_std_masked_dtype(any_numeric_ea_dtype): + # GH#35516 + df = DataFrame( + { + "a": [2, 1, 1, 1, 2, 2, 1], + "b": Series([pd.NA, 1, 2, 1, 1, 1, 2], dtype="Float64"), + } + ) + result = df.groupby("a").std() + expected = DataFrame( + {"b": [0.57735, 0]}, index=Index([1, 2], name="a"), dtype="Float64" + ) + tm.assert_frame_equal(result, expected) + + +def test_agg_str_with_kwarg_axis_1_raises(df, reduction_func): + gb = df.groupby(level=0) + warn_msg = f"DataFrameGroupBy.{reduction_func} with axis=1 is deprecated" + if reduction_func in ("idxmax", "idxmin"): + error = TypeError + msg = "'[<>]' not supported between instances of 'float' and 'str'" + warn = FutureWarning + else: + error = ValueError + msg = f"Operation {reduction_func} does not support axis=1" + warn = None + with pytest.raises(error, match=msg): + with tm.assert_produces_warning(warn, match=warn_msg): + gb.agg(reduction_func, axis=1) + + +@pytest.mark.parametrize( + "func, expected, dtype, result_dtype_dict", + [ + ("sum", [5, 7, 9], "int64", {}), + ("std", [4.5**0.5] * 3, int, {"i": float, "j": float, "k": float}), + ("var", [4.5] * 3, int, {"i": float, "j": float, "k": float}), + ("sum", [5, 7, 9], "Int64", {"j": "int64"}), + ("std", [4.5**0.5] * 3, "Int64", {"i": float, "j": float, "k": float}), + ("var", [4.5] * 3, "Int64", {"i": "float64", "j": "float64", "k": "float64"}), + ], +) +def test_multiindex_groupby_mixed_cols_axis1(func, expected, dtype, result_dtype_dict): + # GH#43209 + df = DataFrame( + [[1, 2, 3, 4, 5, 6]] * 3, + columns=MultiIndex.from_product([["a", "b"], ["i", "j", "k"]]), + ).astype({("a", "j"): dtype, ("b", "j"): dtype}) + + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + gb = df.groupby(level=1, axis=1) + result = gb.agg(func) + expected = DataFrame([expected] * 3, columns=["i", "j", "k"]).astype( + result_dtype_dict + ) + + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "func, expected_data, result_dtype_dict", + [ + ("sum", [[2, 4], [10, 12], [18, 20]], {10: "int64", 20: "int64"}), + # std should ideally return Int64 / Float64 #43330 + ("std", [[2**0.5] * 2] * 3, "float64"), + ("var", [[2] * 2] * 3, {10: "float64", 20: "float64"}), + ], +) +def test_groupby_mixed_cols_axis1(func, expected_data, result_dtype_dict): + # GH#43209 + df = DataFrame( + np.arange(12).reshape(3, 4), + index=Index([0, 1, 0], name="y"), + columns=Index([10, 20, 10, 20], name="x"), + dtype="int64", + ).astype({10: "Int64"}) + + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + gb = df.groupby("x", axis=1) + result = gb.agg(func) + expected = DataFrame( + data=expected_data, + index=Index([0, 1, 0], name="y"), + columns=Index([10, 20], name="x"), + ).astype(result_dtype_dict) + tm.assert_frame_equal(result, expected) + + +def test_aggregate_item_by_item(df): + grouped = df.groupby("A") + + aggfun_0 = lambda ser: ser.size + result = grouped.agg(aggfun_0) + foosum = (df.A == "foo").sum() + barsum = (df.A == "bar").sum() + K = len(result.columns) + + # GH5782 + exp = Series(np.array([foosum] * K), index=list("BCD"), name="foo") + tm.assert_series_equal(result.xs("foo"), exp) + + exp = Series(np.array([barsum] * K), index=list("BCD"), name="bar") + tm.assert_almost_equal(result.xs("bar"), exp) + + def aggfun_1(ser): + return ser.size + + result = DataFrame().groupby(df.A).agg(aggfun_1) + assert isinstance(result, DataFrame) + assert len(result) == 0 + + +def test_wrap_agg_out(three_group): + grouped = three_group.groupby(["A", "B"]) + + def func(ser): + if ser.dtype in (object, "string"): + raise TypeError("Test error message") + return ser.sum() + + with pytest.raises(TypeError, match="Test error message"): + grouped.aggregate(func) + result = grouped[["D", "E", "F"]].aggregate(func) + exp_grouped = three_group.loc[:, ["A", "B", "D", "E", "F"]] + expected = exp_grouped.groupby(["A", "B"]).aggregate(func) + tm.assert_frame_equal(result, expected) + + +def test_agg_multiple_functions_maintain_order(df): + # GH #610 + funcs = [("mean", np.mean), ("max", np.max), ("min", np.min)] + msg = "is currently using SeriesGroupBy.mean" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("A")["C"].agg(funcs) + exp_cols = Index(["mean", "max", "min"]) + + tm.assert_index_equal(result.columns, exp_cols) + + +def test_series_index_name(df): + grouped = df.loc[:, ["C"]].groupby(df["A"]) + result = grouped.agg(lambda x: x.mean()) + assert result.index.name == "A" + + +def test_agg_multiple_functions_same_name(): + # GH 30880 + df = DataFrame( + np.random.default_rng(2).standard_normal((1000, 3)), + index=pd.date_range("1/1/2012", freq="s", periods=1000), + columns=["A", "B", "C"], + ) + result = df.resample("3min").agg( + {"A": [partial(np.quantile, q=0.9999), partial(np.quantile, q=0.1111)]} + ) + expected_index = pd.date_range("1/1/2012", freq="3min", periods=6) + expected_columns = MultiIndex.from_tuples([("A", "quantile"), ("A", "quantile")]) + expected_values = np.array( + [df.resample("3min").A.quantile(q=q).values for q in [0.9999, 0.1111]] + ).T + expected = DataFrame( + expected_values, columns=expected_columns, index=expected_index + ) + tm.assert_frame_equal(result, expected) + + +def test_agg_multiple_functions_same_name_with_ohlc_present(): + # GH 30880 + # ohlc expands dimensions, so different test to the above is required. + df = DataFrame( + np.random.default_rng(2).standard_normal((1000, 3)), + index=pd.date_range("1/1/2012", freq="s", periods=1000, name="dti"), + columns=Index(["A", "B", "C"], name="alpha"), + ) + result = df.resample("3min").agg( + {"A": ["ohlc", partial(np.quantile, q=0.9999), partial(np.quantile, q=0.1111)]} + ) + expected_index = pd.date_range("1/1/2012", freq="3min", periods=6, name="dti") + expected_columns = MultiIndex.from_tuples( + [ + ("A", "ohlc", "open"), + ("A", "ohlc", "high"), + ("A", "ohlc", "low"), + ("A", "ohlc", "close"), + ("A", "quantile", "A"), + ("A", "quantile", "A"), + ], + names=["alpha", None, None], + ) + non_ohlc_expected_values = np.array( + [df.resample("3min").A.quantile(q=q).values for q in [0.9999, 0.1111]] + ).T + expected_values = np.hstack( + [df.resample("3min").A.ohlc(), non_ohlc_expected_values] + ) + expected = DataFrame( + expected_values, columns=expected_columns, index=expected_index + ) + tm.assert_frame_equal(result, expected) + + +def test_multiple_functions_tuples_and_non_tuples(df): + # #1359 + # Columns B and C would cause partial failure + df = df.drop(columns=["B", "C"]) + + funcs = [("foo", "mean"), "std"] + ex_funcs = [("foo", "mean"), ("std", "std")] + + result = df.groupby("A")["D"].agg(funcs) + expected = df.groupby("A")["D"].agg(ex_funcs) + tm.assert_frame_equal(result, expected) + + result = df.groupby("A").agg(funcs) + expected = df.groupby("A").agg(ex_funcs) + tm.assert_frame_equal(result, expected) + + +def test_more_flexible_frame_multi_function(df): + grouped = df.groupby("A") + + exmean = grouped.agg({"C": "mean", "D": "mean"}) + exstd = grouped.agg({"C": "std", "D": "std"}) + + expected = concat([exmean, exstd], keys=["mean", "std"], axis=1) + expected = expected.swaplevel(0, 1, axis=1).sort_index(level=0, axis=1) + + d = {"C": ["mean", "std"], "D": ["mean", "std"]} + result = grouped.aggregate(d) + + tm.assert_frame_equal(result, expected) + + # be careful + result = grouped.aggregate({"C": "mean", "D": ["mean", "std"]}) + expected = grouped.aggregate({"C": "mean", "D": ["mean", "std"]}) + tm.assert_frame_equal(result, expected) + + def numpymean(x): + return np.mean(x) + + def numpystd(x): + return np.std(x, ddof=1) + + # this uses column selection & renaming + msg = r"nested renamer is not supported" + with pytest.raises(SpecificationError, match=msg): + d = {"C": "mean", "D": {"foo": "mean", "bar": "std"}} + grouped.aggregate(d) + + # But without renaming, these functions are OK + d = {"C": ["mean"], "D": [numpymean, numpystd]} + grouped.aggregate(d) + + +def test_multi_function_flexible_mix(df): + # GH #1268 + grouped = df.groupby("A") + + # Expected + d = {"C": {"foo": "mean", "bar": "std"}, "D": {"sum": "sum"}} + # this uses column selection & renaming + msg = r"nested renamer is not supported" + with pytest.raises(SpecificationError, match=msg): + grouped.aggregate(d) + + # Test 1 + d = {"C": {"foo": "mean", "bar": "std"}, "D": "sum"} + # this uses column selection & renaming + with pytest.raises(SpecificationError, match=msg): + grouped.aggregate(d) + + # Test 2 + d = {"C": {"foo": "mean", "bar": "std"}, "D": "sum"} + # this uses column selection & renaming + with pytest.raises(SpecificationError, match=msg): + grouped.aggregate(d) + + +def test_groupby_agg_coercing_bools(): + # issue 14873 + dat = DataFrame({"a": [1, 1, 2, 2], "b": [0, 1, 2, 3], "c": [None, None, 1, 1]}) + gp = dat.groupby("a") + + index = Index([1, 2], name="a") + + result = gp["b"].aggregate(lambda x: (x != 0).all()) + expected = Series([False, True], index=index, name="b") + tm.assert_series_equal(result, expected) + + result = gp["c"].aggregate(lambda x: x.isnull().all()) + expected = Series([True, False], index=index, name="c") + tm.assert_series_equal(result, expected) + + +def test_groupby_agg_dict_with_getitem(): + # issue 25471 + dat = DataFrame({"A": ["A", "A", "B", "B", "B"], "B": [1, 2, 1, 1, 2]}) + result = dat.groupby("A")[["B"]].agg({"B": "sum"}) + + expected = DataFrame({"B": [3, 4]}, index=["A", "B"]).rename_axis("A", axis=0) + + tm.assert_frame_equal(result, expected) + + +def test_groupby_agg_dict_dup_columns(): + # GH#55006 + df = DataFrame( + [[1, 2, 3, 4], [1, 3, 4, 5], [2, 4, 5, 6]], + columns=["a", "b", "c", "c"], + ) + gb = df.groupby("a") + result = gb.agg({"b": "sum"}) + expected = DataFrame({"b": [5, 4]}, index=Index([1, 2], name="a")) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "op", + [ + lambda x: x.sum(), + lambda x: x.cumsum(), + lambda x: x.transform("sum"), + lambda x: x.transform("cumsum"), + lambda x: x.agg("sum"), + lambda x: x.agg("cumsum"), + ], +) +def test_bool_agg_dtype(op): + # GH 7001 + # Bool sum aggregations result in int + df = DataFrame({"a": [1, 1], "b": [False, True]}) + s = df.set_index("a")["b"] + + result = op(df.groupby("a"))["b"].dtype + assert is_integer_dtype(result) + + result = op(s.groupby("a")).dtype + assert is_integer_dtype(result) + + +@pytest.mark.parametrize( + "keys, agg_index", + [ + (["a"], Index([1], name="a")), + (["a", "b"], MultiIndex([[1], [2]], [[0], [0]], names=["a", "b"])), + ], +) +@pytest.mark.parametrize( + "input_dtype", ["bool", "int32", "int64", "float32", "float64"] +) +@pytest.mark.parametrize( + "result_dtype", ["bool", "int32", "int64", "float32", "float64"] +) +@pytest.mark.parametrize("method", ["apply", "aggregate", "transform"]) +def test_callable_result_dtype_frame( + keys, agg_index, input_dtype, result_dtype, method +): + # GH 21240 + df = DataFrame({"a": [1], "b": [2], "c": [True]}) + df["c"] = df["c"].astype(input_dtype) + op = getattr(df.groupby(keys)[["c"]], method) + result = op(lambda x: x.astype(result_dtype).iloc[0]) + expected_index = pd.RangeIndex(0, 1) if method == "transform" else agg_index + expected = DataFrame({"c": [df["c"].iloc[0]]}, index=expected_index).astype( + result_dtype + ) + if method == "apply": + expected.columns.names = [0] + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "keys, agg_index", + [ + (["a"], Index([1], name="a")), + (["a", "b"], MultiIndex([[1], [2]], [[0], [0]], names=["a", "b"])), + ], +) +@pytest.mark.parametrize("input", [True, 1, 1.0]) +@pytest.mark.parametrize("dtype", [bool, int, float]) +@pytest.mark.parametrize("method", ["apply", "aggregate", "transform"]) +def test_callable_result_dtype_series(keys, agg_index, input, dtype, method): + # GH 21240 + df = DataFrame({"a": [1], "b": [2], "c": [input]}) + op = getattr(df.groupby(keys)["c"], method) + result = op(lambda x: x.astype(dtype).iloc[0]) + expected_index = pd.RangeIndex(0, 1) if method == "transform" else agg_index + expected = Series([df["c"].iloc[0]], index=expected_index, name="c").astype(dtype) + tm.assert_series_equal(result, expected) + + +def test_order_aggregate_multiple_funcs(): + # GH 25692 + df = DataFrame({"A": [1, 1, 2, 2], "B": [1, 2, 3, 4]}) + + res = df.groupby("A").agg(["sum", "max", "mean", "ohlc", "min"]) + result = res.columns.levels[1] + + expected = Index(["sum", "max", "mean", "ohlc", "min"]) + + tm.assert_index_equal(result, expected) + + +def test_ohlc_ea_dtypes(any_numeric_ea_dtype): + # GH#37493 + df = DataFrame( + {"a": [1, 1, 2, 3, 4, 4], "b": [22, 11, pd.NA, 10, 20, pd.NA]}, + dtype=any_numeric_ea_dtype, + ) + gb = df.groupby("a") + result = gb.ohlc() + expected = DataFrame( + [[22, 22, 11, 11], [pd.NA] * 4, [10] * 4, [20] * 4], + columns=MultiIndex.from_product([["b"], ["open", "high", "low", "close"]]), + index=Index([1, 2, 3, 4], dtype=any_numeric_ea_dtype, name="a"), + dtype=any_numeric_ea_dtype, + ) + tm.assert_frame_equal(result, expected) + + gb2 = df.groupby("a", as_index=False) + result2 = gb2.ohlc() + expected2 = expected.reset_index() + tm.assert_frame_equal(result2, expected2) + + +@pytest.mark.parametrize("dtype", [np.int64, np.uint64]) +@pytest.mark.parametrize("how", ["first", "last", "min", "max", "mean", "median"]) +def test_uint64_type_handling(dtype, how): + # GH 26310 + df = DataFrame({"x": 6903052872240755750, "y": [1, 2]}) + expected = df.groupby("y").agg({"x": how}) + df.x = df.x.astype(dtype) + result = df.groupby("y").agg({"x": how}) + if how not in ("mean", "median"): + # mean and median always result in floats + result.x = result.x.astype(np.int64) + tm.assert_frame_equal(result, expected, check_exact=True) + + +def test_func_duplicates_raises(): + # GH28426 + msg = "Function names" + df = DataFrame({"A": [0, 0, 1, 1], "B": [1, 2, 3, 4]}) + with pytest.raises(SpecificationError, match=msg): + df.groupby("A").agg(["min", "min"]) + + +@pytest.mark.parametrize( + "index", + [ + pd.CategoricalIndex(list("abc")), + pd.interval_range(0, 3), + pd.period_range("2020", periods=3, freq="D"), + MultiIndex.from_tuples([("a", 0), ("a", 1), ("b", 0)]), + ], +) +def test_agg_index_has_complex_internals(index): + # GH 31223 + df = DataFrame({"group": [1, 1, 2], "value": [0, 1, 0]}, index=index) + result = df.groupby("group").agg({"value": Series.nunique}) + expected = DataFrame({"group": [1, 2], "value": [2, 1]}).set_index("group") + tm.assert_frame_equal(result, expected) + + +def test_agg_split_block(): + # https://github.com/pandas-dev/pandas/issues/31522 + df = DataFrame( + { + "key1": ["a", "a", "b", "b", "a"], + "key2": ["one", "two", "one", "two", "one"], + "key3": ["three", "three", "three", "six", "six"], + } + ) + result = df.groupby("key1").min() + expected = DataFrame( + {"key2": ["one", "one"], "key3": ["six", "six"]}, + index=Index(["a", "b"], name="key1"), + ) + tm.assert_frame_equal(result, expected) + + +def test_agg_split_object_part_datetime(): + # https://github.com/pandas-dev/pandas/pull/31616 + df = DataFrame( + { + "A": pd.date_range("2000", periods=4), + "B": ["a", "b", "c", "d"], + "C": [1, 2, 3, 4], + "D": ["b", "c", "d", "e"], + "E": pd.date_range("2000", periods=4), + "F": [1, 2, 3, 4], + } + ).astype(object) + result = df.groupby([0, 0, 0, 0]).min() + expected = DataFrame( + { + "A": [pd.Timestamp("2000")], + "B": ["a"], + "C": [1], + "D": ["b"], + "E": [pd.Timestamp("2000")], + "F": [1], + }, + index=np.array([0]), + dtype=object, + ) + tm.assert_frame_equal(result, expected) + + +class TestNamedAggregationSeries: + def test_series_named_agg(self): + df = Series([1, 2, 3, 4]) + gr = df.groupby([0, 0, 1, 1]) + result = gr.agg(a="sum", b="min") + expected = DataFrame( + {"a": [3, 7], "b": [1, 3]}, columns=["a", "b"], index=np.array([0, 1]) + ) + tm.assert_frame_equal(result, expected) + + result = gr.agg(b="min", a="sum") + expected = expected[["b", "a"]] + tm.assert_frame_equal(result, expected) + + def test_no_args_raises(self): + gr = Series([1, 2]).groupby([0, 1]) + with pytest.raises(TypeError, match="Must provide"): + gr.agg() + + # but we do allow this + result = gr.agg([]) + expected = DataFrame(columns=[]) + tm.assert_frame_equal(result, expected) + + def test_series_named_agg_duplicates_no_raises(self): + # GH28426 + gr = Series([1, 2, 3]).groupby([0, 0, 1]) + grouped = gr.agg(a="sum", b="sum") + expected = DataFrame({"a": [3, 3], "b": [3, 3]}, index=np.array([0, 1])) + tm.assert_frame_equal(expected, grouped) + + def test_mangled(self): + gr = Series([1, 2, 3]).groupby([0, 0, 1]) + result = gr.agg(a=lambda x: 0, b=lambda x: 1) + expected = DataFrame({"a": [0, 0], "b": [1, 1]}, index=np.array([0, 1])) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "inp", + [ + pd.NamedAgg(column="anything", aggfunc="min"), + ("anything", "min"), + ["anything", "min"], + ], + ) + def test_named_agg_nametuple(self, inp): + # GH34422 + s = Series([1, 1, 2, 2, 3, 3, 4, 5]) + msg = f"func is expected but received {type(inp).__name__}" + with pytest.raises(TypeError, match=msg): + s.groupby(s.values).agg(a=inp) + + +class TestNamedAggregationDataFrame: + def test_agg_relabel(self): + df = DataFrame( + {"group": ["a", "a", "b", "b"], "A": [0, 1, 2, 3], "B": [5, 6, 7, 8]} + ) + result = df.groupby("group").agg(a_max=("A", "max"), b_max=("B", "max")) + expected = DataFrame( + {"a_max": [1, 3], "b_max": [6, 8]}, + index=Index(["a", "b"], name="group"), + columns=["a_max", "b_max"], + ) + tm.assert_frame_equal(result, expected) + + # order invariance + p98 = functools.partial(np.percentile, q=98) + result = df.groupby("group").agg( + b_min=("B", "min"), + a_min=("A", "min"), + a_mean=("A", "mean"), + a_max=("A", "max"), + b_max=("B", "max"), + a_98=("A", p98), + ) + expected = DataFrame( + { + "b_min": [5, 7], + "a_min": [0, 2], + "a_mean": [0.5, 2.5], + "a_max": [1, 3], + "b_max": [6, 8], + "a_98": [0.98, 2.98], + }, + index=Index(["a", "b"], name="group"), + columns=["b_min", "a_min", "a_mean", "a_max", "b_max", "a_98"], + ) + tm.assert_frame_equal(result, expected) + + def test_agg_relabel_non_identifier(self): + df = DataFrame( + {"group": ["a", "a", "b", "b"], "A": [0, 1, 2, 3], "B": [5, 6, 7, 8]} + ) + + result = df.groupby("group").agg(**{"my col": ("A", "max")}) + expected = DataFrame({"my col": [1, 3]}, index=Index(["a", "b"], name="group")) + tm.assert_frame_equal(result, expected) + + def test_duplicate_no_raises(self): + # GH 28426, if use same input function on same column, + # no error should raise + df = DataFrame({"A": [0, 0, 1, 1], "B": [1, 2, 3, 4]}) + + grouped = df.groupby("A").agg(a=("B", "min"), b=("B", "min")) + expected = DataFrame({"a": [1, 3], "b": [1, 3]}, index=Index([0, 1], name="A")) + tm.assert_frame_equal(grouped, expected) + + quant50 = functools.partial(np.percentile, q=50) + quant70 = functools.partial(np.percentile, q=70) + quant50.__name__ = "quant50" + quant70.__name__ = "quant70" + + test = DataFrame({"col1": ["a", "a", "b", "b", "b"], "col2": [1, 2, 3, 4, 5]}) + + grouped = test.groupby("col1").agg( + quantile_50=("col2", quant50), quantile_70=("col2", quant70) + ) + expected = DataFrame( + {"quantile_50": [1.5, 4.0], "quantile_70": [1.7, 4.4]}, + index=Index(["a", "b"], name="col1"), + ) + tm.assert_frame_equal(grouped, expected) + + def test_agg_relabel_with_level(self): + df = DataFrame( + {"A": [0, 0, 1, 1], "B": [1, 2, 3, 4]}, + index=MultiIndex.from_product([["A", "B"], ["a", "b"]]), + ) + result = df.groupby(level=0).agg( + aa=("A", "max"), bb=("A", "min"), cc=("B", "mean") + ) + expected = DataFrame( + {"aa": [0, 1], "bb": [0, 1], "cc": [1.5, 3.5]}, index=["A", "B"] + ) + tm.assert_frame_equal(result, expected) + + def test_agg_relabel_other_raises(self): + df = DataFrame({"A": [0, 0, 1], "B": [1, 2, 3]}) + grouped = df.groupby("A") + match = "Must provide" + with pytest.raises(TypeError, match=match): + grouped.agg(foo=1) + + with pytest.raises(TypeError, match=match): + grouped.agg() + + with pytest.raises(TypeError, match=match): + grouped.agg(a=("B", "max"), b=(1, 2, 3)) + + def test_missing_raises(self): + df = DataFrame({"A": [0, 1], "B": [1, 2]}) + match = re.escape("Column(s) ['C'] do not exist") + with pytest.raises(KeyError, match=match): + df.groupby("A").agg(c=("C", "sum")) + + def test_agg_namedtuple(self): + df = DataFrame({"A": [0, 1], "B": [1, 2]}) + result = df.groupby("A").agg( + b=pd.NamedAgg("B", "sum"), c=pd.NamedAgg(column="B", aggfunc="count") + ) + expected = df.groupby("A").agg(b=("B", "sum"), c=("B", "count")) + tm.assert_frame_equal(result, expected) + + def test_mangled(self): + df = DataFrame({"A": [0, 1], "B": [1, 2], "C": [3, 4]}) + result = df.groupby("A").agg(b=("B", lambda x: 0), c=("C", lambda x: 1)) + expected = DataFrame({"b": [0, 0], "c": [1, 1]}, index=Index([0, 1], name="A")) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "agg_col1, agg_col2, agg_col3, agg_result1, agg_result2, agg_result3", + [ + ( + (("y", "A"), "max"), + (("y", "A"), np.mean), + (("y", "B"), "mean"), + [1, 3], + [0.5, 2.5], + [5.5, 7.5], + ), + ( + (("y", "A"), lambda x: max(x)), + (("y", "A"), lambda x: 1), + (("y", "B"), np.mean), + [1, 3], + [1, 1], + [5.5, 7.5], + ), + ( + pd.NamedAgg(("y", "A"), "max"), + pd.NamedAgg(("y", "B"), np.mean), + pd.NamedAgg(("y", "A"), lambda x: 1), + [1, 3], + [5.5, 7.5], + [1, 1], + ), + ], +) +def test_agg_relabel_multiindex_column( + agg_col1, agg_col2, agg_col3, agg_result1, agg_result2, agg_result3 +): + # GH 29422, add tests for multiindex column cases + df = DataFrame( + {"group": ["a", "a", "b", "b"], "A": [0, 1, 2, 3], "B": [5, 6, 7, 8]} + ) + df.columns = MultiIndex.from_tuples([("x", "group"), ("y", "A"), ("y", "B")]) + idx = Index(["a", "b"], name=("x", "group")) + + result = df.groupby(("x", "group")).agg(a_max=(("y", "A"), "max")) + expected = DataFrame({"a_max": [1, 3]}, index=idx) + tm.assert_frame_equal(result, expected) + + msg = "is currently using SeriesGroupBy.mean" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby(("x", "group")).agg( + col_1=agg_col1, col_2=agg_col2, col_3=agg_col3 + ) + expected = DataFrame( + {"col_1": agg_result1, "col_2": agg_result2, "col_3": agg_result3}, index=idx + ) + tm.assert_frame_equal(result, expected) + + +def test_agg_relabel_multiindex_raises_not_exist(): + # GH 29422, add test for raises scenario when aggregate column does not exist + df = DataFrame( + {"group": ["a", "a", "b", "b"], "A": [0, 1, 2, 3], "B": [5, 6, 7, 8]} + ) + df.columns = MultiIndex.from_tuples([("x", "group"), ("y", "A"), ("y", "B")]) + + with pytest.raises(KeyError, match="do not exist"): + df.groupby(("x", "group")).agg(a=(("Y", "a"), "max")) + + +def test_agg_relabel_multiindex_duplicates(): + # GH29422, add test for raises scenario when getting duplicates + # GH28426, after this change, duplicates should also work if the relabelling is + # different + df = DataFrame( + {"group": ["a", "a", "b", "b"], "A": [0, 1, 2, 3], "B": [5, 6, 7, 8]} + ) + df.columns = MultiIndex.from_tuples([("x", "group"), ("y", "A"), ("y", "B")]) + + result = df.groupby(("x", "group")).agg( + a=(("y", "A"), "min"), b=(("y", "A"), "min") + ) + idx = Index(["a", "b"], name=("x", "group")) + expected = DataFrame({"a": [0, 2], "b": [0, 2]}, index=idx) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("kwargs", [{"c": ["min"]}, {"b": [], "c": ["min"]}]) +def test_groupby_aggregate_empty_key(kwargs): + # GH: 32580 + df = DataFrame({"a": [1, 1, 2], "b": [1, 2, 3], "c": [1, 2, 4]}) + result = df.groupby("a").agg(kwargs) + expected = DataFrame( + [1, 4], + index=Index([1, 2], dtype="int64", name="a"), + columns=MultiIndex.from_tuples([["c", "min"]]), + ) + tm.assert_frame_equal(result, expected) + + +def test_groupby_aggregate_empty_key_empty_return(): + # GH: 32580 Check if everything works, when return is empty + df = DataFrame({"a": [1, 1, 2], "b": [1, 2, 3], "c": [1, 2, 4]}) + result = df.groupby("a").agg({"b": []}) + expected = DataFrame(columns=MultiIndex(levels=[["b"], []], codes=[[], []])) + tm.assert_frame_equal(result, expected) + + +def test_groupby_aggregate_empty_with_multiindex_frame(): + # GH 39178 + df = DataFrame(columns=["a", "b", "c"]) + result = df.groupby(["a", "b"], group_keys=False).agg(d=("c", list)) + expected = DataFrame( + columns=["d"], index=MultiIndex([[], []], [[], []], names=["a", "b"]) + ) + tm.assert_frame_equal(result, expected) + + +def test_grouby_agg_loses_results_with_as_index_false_relabel(): + # GH 32240: When the aggregate function relabels column names and + # as_index=False is specified, the results are dropped. + + df = DataFrame( + {"key": ["x", "y", "z", "x", "y", "z"], "val": [1.0, 0.8, 2.0, 3.0, 3.6, 0.75]} + ) + + grouped = df.groupby("key", as_index=False) + result = grouped.agg(min_val=pd.NamedAgg(column="val", aggfunc="min")) + expected = DataFrame({"key": ["x", "y", "z"], "min_val": [1.0, 0.8, 0.75]}) + tm.assert_frame_equal(result, expected) + + +def test_grouby_agg_loses_results_with_as_index_false_relabel_multiindex(): + # GH 32240: When the aggregate function relabels column names and + # as_index=False is specified, the results are dropped. Check if + # multiindex is returned in the right order + + df = DataFrame( + { + "key": ["x", "y", "x", "y", "x", "x"], + "key1": ["a", "b", "c", "b", "a", "c"], + "val": [1.0, 0.8, 2.0, 3.0, 3.6, 0.75], + } + ) + + grouped = df.groupby(["key", "key1"], as_index=False) + result = grouped.agg(min_val=pd.NamedAgg(column="val", aggfunc="min")) + expected = DataFrame( + {"key": ["x", "x", "y"], "key1": ["a", "c", "b"], "min_val": [1.0, 0.75, 0.8]} + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "func", [lambda s: s.mean(), lambda s: np.mean(s), lambda s: np.nanmean(s)] +) +def test_multiindex_custom_func(func): + # GH 31777 + data = [[1, 4, 2], [5, 7, 1]] + df = DataFrame( + data, + columns=MultiIndex.from_arrays( + [[1, 1, 2], [3, 4, 3]], names=["Sisko", "Janeway"] + ), + ) + result = df.groupby(np.array([0, 1])).agg(func) + expected_dict = { + (1, 3): {0: 1.0, 1: 5.0}, + (1, 4): {0: 4.0, 1: 7.0}, + (2, 3): {0: 2.0, 1: 1.0}, + } + expected = DataFrame(expected_dict, index=np.array([0, 1]), columns=df.columns) + tm.assert_frame_equal(result, expected) + + +def myfunc(s): + return np.percentile(s, q=0.90) + + +@pytest.mark.parametrize("func", [lambda s: np.percentile(s, q=0.90), myfunc]) +def test_lambda_named_agg(func): + # see gh-28467 + animals = DataFrame( + { + "kind": ["cat", "dog", "cat", "dog"], + "height": [9.1, 6.0, 9.5, 34.0], + "weight": [7.9, 7.5, 9.9, 198.0], + } + ) + + result = animals.groupby("kind").agg( + mean_height=("height", "mean"), perc90=("height", func) + ) + expected = DataFrame( + [[9.3, 9.1036], [20.0, 6.252]], + columns=["mean_height", "perc90"], + index=Index(["cat", "dog"], name="kind"), + ) + + tm.assert_frame_equal(result, expected) + + +def test_aggregate_mixed_types(): + # GH 16916 + df = DataFrame( + data=np.array([0] * 9).reshape(3, 3), columns=list("XYZ"), index=list("abc") + ) + df["grouping"] = ["group 1", "group 1", 2] + result = df.groupby("grouping").aggregate(lambda x: x.tolist()) + expected_data = [[[0], [0], [0]], [[0, 0], [0, 0], [0, 0]]] + expected = DataFrame( + expected_data, + index=Index([2, "group 1"], dtype="object", name="grouping"), + columns=Index(["X", "Y", "Z"]), + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.xfail(reason="Not implemented;see GH 31256") +def test_aggregate_udf_na_extension_type(): + # https://github.com/pandas-dev/pandas/pull/31359 + # This is currently failing to cast back to Int64Dtype. + # The presence of the NA causes two problems + # 1. NA is not an instance of Int64Dtype.type (numpy.int64) + # 2. The presence of an NA forces object type, so the non-NA values is + # a Python int rather than a NumPy int64. Python ints aren't + # instances of numpy.int64. + def aggfunc(x): + if all(x > 2): + return 1 + else: + return pd.NA + + df = DataFrame({"A": pd.array([1, 2, 3])}) + result = df.groupby([1, 1, 2]).agg(aggfunc) + expected = DataFrame({"A": pd.array([1, pd.NA], dtype="Int64")}, index=[1, 2]) + tm.assert_frame_equal(result, expected) + + +class TestLambdaMangling: + def test_basic(self): + df = DataFrame({"A": [0, 0, 1, 1], "B": [1, 2, 3, 4]}) + result = df.groupby("A").agg({"B": [lambda x: 0, lambda x: 1]}) + + expected = DataFrame( + {("B", ""): [0, 0], ("B", ""): [1, 1]}, + index=Index([0, 1], name="A"), + ) + tm.assert_frame_equal(result, expected) + + def test_mangle_series_groupby(self): + gr = Series([1, 2, 3, 4]).groupby([0, 0, 1, 1]) + result = gr.agg([lambda x: 0, lambda x: 1]) + exp_data = {"": [0, 0], "": [1, 1]} + expected = DataFrame(exp_data, index=np.array([0, 1])) + tm.assert_frame_equal(result, expected) + + @pytest.mark.xfail(reason="GH-26611. kwargs for multi-agg.") + def test_with_kwargs(self): + f1 = lambda x, y, b=1: x.sum() + y + b + f2 = lambda x, y, b=2: x.sum() + y * b + result = Series([1, 2]).groupby([0, 0]).agg([f1, f2], 0) + expected = DataFrame({"": [4], "": [6]}) + tm.assert_frame_equal(result, expected) + + result = Series([1, 2]).groupby([0, 0]).agg([f1, f2], 0, b=10) + expected = DataFrame({"": [13], "": [30]}) + tm.assert_frame_equal(result, expected) + + def test_agg_with_one_lambda(self): + # GH 25719, write tests for DataFrameGroupby.agg with only one lambda + df = DataFrame( + { + "kind": ["cat", "dog", "cat", "dog"], + "height": [9.1, 6.0, 9.5, 34.0], + "weight": [7.9, 7.5, 9.9, 198.0], + } + ) + + columns = ["height_sqr_min", "height_max", "weight_max"] + expected = DataFrame( + { + "height_sqr_min": [82.81, 36.00], + "height_max": [9.5, 34.0], + "weight_max": [9.9, 198.0], + }, + index=Index(["cat", "dog"], name="kind"), + columns=columns, + ) + + # check pd.NameAgg case + result1 = df.groupby(by="kind").agg( + height_sqr_min=pd.NamedAgg( + column="height", aggfunc=lambda x: np.min(x**2) + ), + height_max=pd.NamedAgg(column="height", aggfunc="max"), + weight_max=pd.NamedAgg(column="weight", aggfunc="max"), + ) + tm.assert_frame_equal(result1, expected) + + # check agg(key=(col, aggfunc)) case + result2 = df.groupby(by="kind").agg( + height_sqr_min=("height", lambda x: np.min(x**2)), + height_max=("height", "max"), + weight_max=("weight", "max"), + ) + tm.assert_frame_equal(result2, expected) + + def test_agg_multiple_lambda(self): + # GH25719, test for DataFrameGroupby.agg with multiple lambdas + # with mixed aggfunc + df = DataFrame( + { + "kind": ["cat", "dog", "cat", "dog"], + "height": [9.1, 6.0, 9.5, 34.0], + "weight": [7.9, 7.5, 9.9, 198.0], + } + ) + columns = [ + "height_sqr_min", + "height_max", + "weight_max", + "height_max_2", + "weight_min", + ] + expected = DataFrame( + { + "height_sqr_min": [82.81, 36.00], + "height_max": [9.5, 34.0], + "weight_max": [9.9, 198.0], + "height_max_2": [9.5, 34.0], + "weight_min": [7.9, 7.5], + }, + index=Index(["cat", "dog"], name="kind"), + columns=columns, + ) + + # check agg(key=(col, aggfunc)) case + result1 = df.groupby(by="kind").agg( + height_sqr_min=("height", lambda x: np.min(x**2)), + height_max=("height", "max"), + weight_max=("weight", "max"), + height_max_2=("height", lambda x: np.max(x)), + weight_min=("weight", lambda x: np.min(x)), + ) + tm.assert_frame_equal(result1, expected) + + # check pd.NamedAgg case + result2 = df.groupby(by="kind").agg( + height_sqr_min=pd.NamedAgg( + column="height", aggfunc=lambda x: np.min(x**2) + ), + height_max=pd.NamedAgg(column="height", aggfunc="max"), + weight_max=pd.NamedAgg(column="weight", aggfunc="max"), + height_max_2=pd.NamedAgg(column="height", aggfunc=lambda x: np.max(x)), + weight_min=pd.NamedAgg(column="weight", aggfunc=lambda x: np.min(x)), + ) + tm.assert_frame_equal(result2, expected) + + +def test_groupby_get_by_index(): + # GH 33439 + df = DataFrame({"A": ["S", "W", "W"], "B": [1.0, 1.0, 2.0]}) + res = df.groupby("A").agg({"B": lambda x: x.get(x.index[-1])}) + expected = DataFrame({"A": ["S", "W"], "B": [1.0, 2.0]}).set_index("A") + tm.assert_frame_equal(res, expected) + + +@pytest.mark.parametrize( + "grp_col_dict, exp_data", + [ + ({"nr": "min", "cat_ord": "min"}, {"nr": [1, 5], "cat_ord": ["a", "c"]}), + ({"cat_ord": "min"}, {"cat_ord": ["a", "c"]}), + ({"nr": "min"}, {"nr": [1, 5]}), + ], +) +def test_groupby_single_agg_cat_cols(grp_col_dict, exp_data): + # test single aggregations on ordered categorical cols GHGH27800 + + # create the result dataframe + input_df = DataFrame( + { + "nr": [1, 2, 3, 4, 5, 6, 7, 8], + "cat_ord": list("aabbccdd"), + "cat": list("aaaabbbb"), + } + ) + + input_df = input_df.astype({"cat": "category", "cat_ord": "category"}) + input_df["cat_ord"] = input_df["cat_ord"].cat.as_ordered() + result_df = input_df.groupby("cat", observed=False).agg(grp_col_dict) + + # create expected dataframe + cat_index = pd.CategoricalIndex( + ["a", "b"], categories=["a", "b"], ordered=False, name="cat", dtype="category" + ) + + expected_df = DataFrame(data=exp_data, index=cat_index) + + if "cat_ord" in expected_df: + # ordered categorical columns should be preserved + dtype = input_df["cat_ord"].dtype + expected_df["cat_ord"] = expected_df["cat_ord"].astype(dtype) + + tm.assert_frame_equal(result_df, expected_df) + + +@pytest.mark.parametrize( + "grp_col_dict, exp_data", + [ + ({"nr": ["min", "max"], "cat_ord": "min"}, [(1, 4, "a"), (5, 8, "c")]), + ({"nr": "min", "cat_ord": ["min", "max"]}, [(1, "a", "b"), (5, "c", "d")]), + ({"cat_ord": ["min", "max"]}, [("a", "b"), ("c", "d")]), + ], +) +def test_groupby_combined_aggs_cat_cols(grp_col_dict, exp_data): + # test combined aggregations on ordered categorical cols GH27800 + + # create the result dataframe + input_df = DataFrame( + { + "nr": [1, 2, 3, 4, 5, 6, 7, 8], + "cat_ord": list("aabbccdd"), + "cat": list("aaaabbbb"), + } + ) + + input_df = input_df.astype({"cat": "category", "cat_ord": "category"}) + input_df["cat_ord"] = input_df["cat_ord"].cat.as_ordered() + result_df = input_df.groupby("cat", observed=False).agg(grp_col_dict) + + # create expected dataframe + cat_index = pd.CategoricalIndex( + ["a", "b"], categories=["a", "b"], ordered=False, name="cat", dtype="category" + ) + + # unpack the grp_col_dict to create the multi-index tuple + # this tuple will be used to create the expected dataframe index + multi_index_list = [] + for k, v in grp_col_dict.items(): + if isinstance(v, list): + multi_index_list.extend([k, value] for value in v) + else: + multi_index_list.append([k, v]) + multi_index = MultiIndex.from_tuples(tuple(multi_index_list)) + + expected_df = DataFrame(data=exp_data, columns=multi_index, index=cat_index) + for col in expected_df.columns: + if isinstance(col, tuple) and "cat_ord" in col: + # ordered categorical should be preserved + expected_df[col] = expected_df[col].astype(input_df["cat_ord"].dtype) + + tm.assert_frame_equal(result_df, expected_df) + + +def test_nonagg_agg(): + # GH 35490 - Single/Multiple agg of non-agg function give same results + # TODO: agg should raise for functions that don't aggregate + df = DataFrame({"a": [1, 1, 2, 2], "b": [1, 2, 2, 1]}) + g = df.groupby("a") + + result = g.agg(["cumsum"]) + result.columns = result.columns.droplevel(-1) + expected = g.agg("cumsum") + + tm.assert_frame_equal(result, expected) + + +def test_aggregate_datetime_objects(): + # https://github.com/pandas-dev/pandas/issues/36003 + # ensure we don't raise an error but keep object dtype for out-of-bounds + # datetimes + df = DataFrame( + { + "A": ["X", "Y"], + "B": [ + datetime.datetime(2005, 1, 1, 10, 30, 23, 540000), + datetime.datetime(3005, 1, 1, 10, 30, 23, 540000), + ], + } + ) + result = df.groupby("A").B.max() + expected = df.set_index("A")["B"] + tm.assert_series_equal(result, expected) + + +def test_groupby_index_object_dtype(): + # GH 40014 + df = DataFrame({"c0": ["x", "x", "x"], "c1": ["x", "x", "y"], "p": [0, 1, 2]}) + df.index = df.index.astype("O") + grouped = df.groupby(["c0", "c1"]) + res = grouped.p.agg(lambda x: all(x > 0)) + # Check that providing a user-defined function in agg() + # produces the correct index shape when using an object-typed index. + expected_index = MultiIndex.from_tuples( + [("x", "x"), ("x", "y")], names=("c0", "c1") + ) + expected = Series([False, True], index=expected_index, name="p") + tm.assert_series_equal(res, expected) + + +def test_timeseries_groupby_agg(): + # GH#43290 + + def func(ser): + if ser.isna().all(): + return None + return np.sum(ser) + + df = DataFrame([1.0], index=[pd.Timestamp("2018-01-16 00:00:00+00:00")]) + res = df.groupby(lambda x: 1).agg(func) + + expected = DataFrame([[1.0]], index=[1]) + tm.assert_frame_equal(res, expected) + + +def test_groupby_agg_precision(any_real_numeric_dtype): + if any_real_numeric_dtype in tm.ALL_INT_NUMPY_DTYPES: + max_value = np.iinfo(any_real_numeric_dtype).max + if any_real_numeric_dtype in tm.FLOAT_NUMPY_DTYPES: + max_value = np.finfo(any_real_numeric_dtype).max + if any_real_numeric_dtype in tm.FLOAT_EA_DTYPES: + max_value = np.finfo(any_real_numeric_dtype.lower()).max + if any_real_numeric_dtype in tm.ALL_INT_EA_DTYPES: + max_value = np.iinfo(any_real_numeric_dtype.lower()).max + + df = DataFrame( + { + "key1": ["a"], + "key2": ["b"], + "key3": pd.array([max_value], dtype=any_real_numeric_dtype), + } + ) + arrays = [["a"], ["b"]] + index = MultiIndex.from_arrays(arrays, names=("key1", "key2")) + + expected = DataFrame( + {"key3": pd.array([max_value], dtype=any_real_numeric_dtype)}, index=index + ) + result = df.groupby(["key1", "key2"]).agg(lambda x: x) + tm.assert_frame_equal(result, expected) + + +def test_groupby_aggregate_directory(reduction_func): + # GH#32793 + if reduction_func in ["corrwith", "nth"]: + return None + + obj = DataFrame([[0, 1], [0, np.nan]]) + + result_reduced_series = obj.groupby(0).agg(reduction_func) + result_reduced_frame = obj.groupby(0).agg({1: reduction_func}) + + if reduction_func in ["size", "ngroup"]: + # names are different: None / 1 + tm.assert_series_equal( + result_reduced_series, result_reduced_frame[1], check_names=False + ) + else: + tm.assert_frame_equal(result_reduced_series, result_reduced_frame) + tm.assert_series_equal( + result_reduced_series.dtypes, result_reduced_frame.dtypes + ) + + +def test_group_mean_timedelta_nat(): + # GH43132 + data = Series(["1 day", "3 days", "NaT"], dtype="timedelta64[ns]") + expected = Series(["2 days"], dtype="timedelta64[ns]", index=np.array([0])) + + result = data.groupby([0, 0, 0]).mean() + + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "input_data, expected_output", + [ + ( # no timezone + ["2021-01-01T00:00", "NaT", "2021-01-01T02:00"], + ["2021-01-01T01:00"], + ), + ( # timezone + ["2021-01-01T00:00-0100", "NaT", "2021-01-01T02:00-0100"], + ["2021-01-01T01:00-0100"], + ), + ], +) +def test_group_mean_datetime64_nat(input_data, expected_output): + # GH43132 + data = to_datetime(Series(input_data)) + expected = to_datetime(Series(expected_output, index=np.array([0]))) + + result = data.groupby([0, 0, 0]).mean() + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "func, output", [("mean", [8 + 18j, 10 + 22j]), ("sum", [40 + 90j, 50 + 110j])] +) +def test_groupby_complex(func, output): + # GH#43701 + data = Series(np.arange(20).reshape(10, 2).dot([1, 2j])) + result = data.groupby(data.index % 2).agg(func) + expected = Series(output) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("func", ["min", "max", "var"]) +def test_groupby_complex_raises(func): + # GH#43701 + data = Series(np.arange(20).reshape(10, 2).dot([1, 2j])) + msg = "No matching signature found" + with pytest.raises(TypeError, match=msg): + data.groupby(data.index % 2).agg(func) + + +@pytest.mark.parametrize( + "func", [["min"], ["mean", "max"], {"b": "sum"}, {"b": "prod", "c": "median"}] +) +def test_multi_axis_1_raises(func): + # GH#46995 + df = DataFrame({"a": [1, 1, 2], "b": [3, 4, 5], "c": [6, 7, 8]}) + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + gb = df.groupby("a", axis=1) + with pytest.raises(NotImplementedError, match="axis other than 0 is not supported"): + gb.agg(func) + + +@pytest.mark.parametrize( + "test, constant", + [ + ([[20, "A"], [20, "B"], [10, "C"]], {0: [10, 20], 1: ["C", ["A", "B"]]}), + ([[20, "A"], [20, "B"], [30, "C"]], {0: [20, 30], 1: [["A", "B"], "C"]}), + ([["a", 1], ["a", 1], ["b", 2], ["b", 3]], {0: ["a", "b"], 1: [1, [2, 3]]}), + pytest.param( + [["a", 1], ["a", 2], ["b", 3], ["b", 3]], + {0: ["a", "b"], 1: [[1, 2], 3]}, + marks=pytest.mark.xfail, + ), + ], +) +def test_agg_of_mode_list(test, constant): + # GH#25581 + df1 = DataFrame(test) + result = df1.groupby(0).agg(Series.mode) + # Mode usually only returns 1 value, but can return a list in the case of a tie. + + expected = DataFrame(constant) + expected = expected.set_index(0) + + tm.assert_frame_equal(result, expected) + + +def test_dataframe_groupy_agg_list_like_func_with_args(): + # GH#50624 + df = DataFrame({"x": [1, 2, 3], "y": ["a", "b", "c"]}) + gb = df.groupby("y") + + def foo1(x, a=1, c=0): + return x.sum() + a + c + + def foo2(x, b=2, c=0): + return x.sum() + b + c + + msg = r"foo1\(\) got an unexpected keyword argument 'b'" + with pytest.raises(TypeError, match=msg): + gb.agg([foo1, foo2], 3, b=3, c=4) + + result = gb.agg([foo1, foo2], 3, c=4) + expected = DataFrame( + [[8, 8], [9, 9], [10, 10]], + index=Index(["a", "b", "c"], name="y"), + columns=MultiIndex.from_tuples([("x", "foo1"), ("x", "foo2")]), + ) + tm.assert_frame_equal(result, expected) + + +def test_series_groupy_agg_list_like_func_with_args(): + # GH#50624 + s = Series([1, 2, 3]) + sgb = s.groupby(s) + + def foo1(x, a=1, c=0): + return x.sum() + a + c + + def foo2(x, b=2, c=0): + return x.sum() + b + c + + msg = r"foo1\(\) got an unexpected keyword argument 'b'" + with pytest.raises(TypeError, match=msg): + sgb.agg([foo1, foo2], 3, b=3, c=4) + + result = sgb.agg([foo1, foo2], 3, c=4) + expected = DataFrame( + [[8, 8], [9, 9], [10, 10]], index=Index([1, 2, 3]), columns=["foo1", "foo2"] + ) + tm.assert_frame_equal(result, expected) + + +def test_agg_groupings_selection(): + # GH#51186 - a selected grouping should be in the output of agg + df = DataFrame({"a": [1, 1, 2], "b": [3, 3, 4], "c": [5, 6, 7]}) + gb = df.groupby(["a", "b"]) + selected_gb = gb[["b", "c"]] + result = selected_gb.agg(lambda x: x.sum()) + index = MultiIndex( + levels=[[1, 2], [3, 4]], codes=[[0, 1], [0, 1]], names=["a", "b"] + ) + expected = DataFrame({"b": [6, 4], "c": [11, 7]}, index=index) + tm.assert_frame_equal(result, expected) + + +def test_agg_multiple_with_as_index_false_subset_to_a_single_column(): + # GH#50724 + df = DataFrame({"a": [1, 1, 2], "b": [3, 4, 5]}) + gb = df.groupby("a", as_index=False)["b"] + result = gb.agg(["sum", "mean"]) + expected = DataFrame({"a": [1, 2], "sum": [7, 5], "mean": [3.5, 5.0]}) + tm.assert_frame_equal(result, expected) + + +def test_agg_with_as_index_false_with_list(): + # GH#52849 + df = DataFrame({"a1": [0, 0, 1], "a2": [2, 3, 3], "b": [4, 5, 6]}) + gb = df.groupby(by=["a1", "a2"], as_index=False) + result = gb.agg(["sum"]) + + expected = DataFrame( + data=[[0, 2, 4], [0, 3, 5], [1, 3, 6]], + columns=MultiIndex.from_tuples([("a1", ""), ("a2", ""), ("b", "sum")]), + ) + tm.assert_frame_equal(result, expected) + + +def test_groupby_agg_extension_timedelta_cumsum_with_named_aggregation(): + # GH#41720 + expected = DataFrame( + { + "td": { + 0: pd.Timedelta("0 days 01:00:00"), + 1: pd.Timedelta("0 days 01:15:00"), + 2: pd.Timedelta("0 days 01:15:00"), + } + } + ) + df = DataFrame( + { + "td": Series( + ["0 days 01:00:00", "0 days 00:15:00", "0 days 01:15:00"], + dtype="timedelta64[ns]", + ), + "grps": ["a", "a", "b"], + } + ) + gb = df.groupby("grps") + result = gb.agg(td=("td", "cumsum")) + tm.assert_frame_equal(result, expected) + + +def test_groupby_aggregation_empty_group(): + # https://github.com/pandas-dev/pandas/issues/18869 + def func(x): + if len(x) == 0: + raise ValueError("length must not be 0") + return len(x) + + df = DataFrame( + {"A": pd.Categorical(["a", "a"], categories=["a", "b", "c"]), "B": [1, 1]} + ) + msg = "length must not be 0" + with pytest.raises(ValueError, match=msg): + df.groupby("A", observed=False).agg(func) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/aggregate/test_cython.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/aggregate/test_cython.py new file mode 100644 index 0000000000000000000000000000000000000000..0d04af3801dbed076473e2563c1510cf15151311 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/aggregate/test_cython.py @@ -0,0 +1,437 @@ +""" +test cython .agg behavior +""" + +import numpy as np +import pytest + +from pandas.core.dtypes.common import ( + is_float_dtype, + is_integer_dtype, +) + +import pandas as pd +from pandas import ( + DataFrame, + Index, + NaT, + Series, + Timedelta, + Timestamp, + bdate_range, +) +import pandas._testing as tm +import pandas.core.common as com + + +@pytest.mark.parametrize( + "op_name", + [ + "count", + "sum", + "std", + "var", + "sem", + "mean", + pytest.param( + "median", + # ignore mean of empty slice + # and all-NaN + marks=[pytest.mark.filterwarnings("ignore::RuntimeWarning")], + ), + "prod", + "min", + "max", + ], +) +def test_cythonized_aggers(op_name): + data = { + "A": [0, 0, 0, 0, 1, 1, 1, 1, 1, 1.0, np.nan, np.nan], + "B": ["A", "B"] * 6, + "C": np.random.default_rng(2).standard_normal(12), + } + df = DataFrame(data) + df.loc[2:10:2, "C"] = np.nan + + op = lambda x: getattr(x, op_name)() + + # single column + grouped = df.drop(["B"], axis=1).groupby("A") + exp = {cat: op(group["C"]) for cat, group in grouped} + exp = DataFrame({"C": exp}) + exp.index.name = "A" + result = op(grouped) + tm.assert_frame_equal(result, exp) + + # multiple columns + grouped = df.groupby(["A", "B"]) + expd = {} + for (cat1, cat2), group in grouped: + expd.setdefault(cat1, {})[cat2] = op(group["C"]) + exp = DataFrame(expd).T.stack(future_stack=True) + exp.index.names = ["A", "B"] + exp.name = "C" + + result = op(grouped)["C"] + if op_name in ["sum", "prod"]: + tm.assert_series_equal(result, exp) + + +def test_cython_agg_boolean(): + frame = DataFrame( + { + "a": np.random.default_rng(2).integers(0, 5, 50), + "b": np.random.default_rng(2).integers(0, 2, 50).astype("bool"), + } + ) + result = frame.groupby("a")["b"].mean() + msg = "using SeriesGroupBy.mean" + with tm.assert_produces_warning(FutureWarning, match=msg): + # GH#53425 + expected = frame.groupby("a")["b"].agg(np.mean) + + tm.assert_series_equal(result, expected) + + +def test_cython_agg_nothing_to_agg(): + frame = DataFrame( + {"a": np.random.default_rng(2).integers(0, 5, 50), "b": ["foo", "bar"] * 25} + ) + + msg = "Cannot use numeric_only=True with SeriesGroupBy.mean and non-numeric dtypes" + with pytest.raises(TypeError, match=msg): + frame.groupby("a")["b"].mean(numeric_only=True) + + frame = DataFrame( + {"a": np.random.default_rng(2).integers(0, 5, 50), "b": ["foo", "bar"] * 25} + ) + + result = frame[["b"]].groupby(frame["a"]).mean(numeric_only=True) + expected = DataFrame( + [], + index=frame["a"].sort_values().drop_duplicates(), + columns=Index([], dtype="str"), + ) + tm.assert_frame_equal(result, expected) + + +def test_cython_agg_nothing_to_agg_with_dates(): + frame = DataFrame( + { + "a": np.random.default_rng(2).integers(0, 5, 50), + "b": ["foo", "bar"] * 25, + "dates": pd.date_range("now", periods=50, freq="min"), + } + ) + msg = "Cannot use numeric_only=True with SeriesGroupBy.mean and non-numeric dtypes" + with pytest.raises(TypeError, match=msg): + frame.groupby("b").dates.mean(numeric_only=True) + + +def test_cython_agg_frame_columns(): + # #2113 + df = DataFrame({"x": [1, 2, 3], "y": [3, 4, 5]}) + + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + df.groupby(level=0, axis="columns").mean() + with tm.assert_produces_warning(FutureWarning, match=msg): + df.groupby(level=0, axis="columns").mean() + with tm.assert_produces_warning(FutureWarning, match=msg): + df.groupby(level=0, axis="columns").mean() + with tm.assert_produces_warning(FutureWarning, match=msg): + df.groupby(level=0, axis="columns").mean() + + +def test_cython_agg_return_dict(): + # GH 16741 + df = DataFrame( + { + "A": ["foo", "bar", "foo", "bar", "foo", "bar", "foo", "foo"], + "B": ["one", "one", "two", "three", "two", "two", "one", "three"], + "C": np.random.default_rng(2).standard_normal(8), + "D": np.random.default_rng(2).standard_normal(8), + } + ) + + ts = df.groupby("A")["B"].agg(lambda x: x.value_counts().to_dict()) + expected = Series( + [{"two": 1, "one": 1, "three": 1}, {"two": 2, "one": 2, "three": 1}], + index=Index(["bar", "foo"], name="A"), + name="B", + ) + tm.assert_series_equal(ts, expected) + + +def test_cython_fail_agg(): + dr = bdate_range("1/1/2000", periods=50) + ts = Series(["A", "B", "C", "D", "E"] * 10, dtype=object, index=dr) + + grouped = ts.groupby(lambda x: x.month) + summed = grouped.sum() + msg = "using SeriesGroupBy.sum" + with tm.assert_produces_warning(FutureWarning, match=msg): + # GH#53425 + expected = grouped.agg(np.sum).astype(object) + tm.assert_series_equal(summed, expected) + + +@pytest.mark.parametrize( + "op, targop", + [ + ("mean", np.mean), + ("median", np.median), + ("var", np.var), + ("sum", np.sum), + ("prod", np.prod), + ("min", np.min), + ("max", np.max), + ("first", lambda x: x.iloc[0]), + ("last", lambda x: x.iloc[-1]), + ], +) +def test__cython_agg_general(op, targop): + df = DataFrame(np.random.default_rng(2).standard_normal(1000)) + labels = np.random.default_rng(2).integers(0, 50, size=1000).astype(float) + + result = df.groupby(labels)._cython_agg_general(op, alt=None, numeric_only=True) + warn = FutureWarning if targop in com._cython_table else None + msg = f"using DataFrameGroupBy.{op}" + with tm.assert_produces_warning(warn, match=msg): + # GH#53425 + expected = df.groupby(labels).agg(targop) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "op, targop", + [ + ("mean", np.mean), + ("median", lambda x: np.median(x) if len(x) > 0 else np.nan), + ("var", lambda x: np.var(x, ddof=1)), + ("min", np.min), + ("max", np.max), + ], +) +def test_cython_agg_empty_buckets(op, targop, observed): + df = DataFrame([11, 12, 13]) + grps = range(0, 55, 5) + + # calling _cython_agg_general directly, instead of via the user API + # which sets different values for min_count, so do that here. + g = df.groupby(pd.cut(df[0], grps), observed=observed) + result = g._cython_agg_general(op, alt=None, numeric_only=True) + + g = df.groupby(pd.cut(df[0], grps), observed=observed) + expected = g.agg(lambda x: targop(x)) + tm.assert_frame_equal(result, expected) + + +def test_cython_agg_empty_buckets_nanops(observed): + # GH-18869 can't call nanops on empty groups, so hardcode expected + # for these + df = DataFrame([11, 12, 13], columns=["a"]) + grps = np.arange(0, 25, 5, dtype=int) + # add / sum + result = df.groupby(pd.cut(df["a"], grps), observed=observed)._cython_agg_general( + "sum", alt=None, numeric_only=True + ) + intervals = pd.interval_range(0, 20, freq=5) + expected = DataFrame( + {"a": [0, 0, 36, 0]}, + index=pd.CategoricalIndex(intervals, name="a", ordered=True), + ) + if observed: + expected = expected[expected.a != 0] + + tm.assert_frame_equal(result, expected) + + # prod + result = df.groupby(pd.cut(df["a"], grps), observed=observed)._cython_agg_general( + "prod", alt=None, numeric_only=True + ) + expected = DataFrame( + {"a": [1, 1, 1716, 1]}, + index=pd.CategoricalIndex(intervals, name="a", ordered=True), + ) + if observed: + expected = expected[expected.a != 1] + + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("op", ["first", "last", "max", "min"]) +@pytest.mark.parametrize( + "data", [Timestamp("2016-10-14 21:00:44.557"), Timedelta("17088 days 21:00:44.557")] +) +def test_cython_with_timestamp_and_nat(op, data): + # https://github.com/pandas-dev/pandas/issues/19526 + df = DataFrame({"a": [0, 1], "b": [data, NaT]}) + index = Index([0, 1], name="a") + + # We will group by a and test the cython aggregations + expected = DataFrame({"b": [data, NaT]}, index=index) + + result = df.groupby("a").aggregate(op) + tm.assert_frame_equal(expected, result) + + +@pytest.mark.parametrize( + "agg", + [ + "min", + "max", + "count", + "sum", + "prod", + "var", + "mean", + "median", + "ohlc", + "cumprod", + "cumsum", + "shift", + "any", + "all", + "quantile", + "first", + "last", + "rank", + "cummin", + "cummax", + ], +) +def test_read_only_buffer_source_agg(agg): + # https://github.com/pandas-dev/pandas/issues/36014 + df = DataFrame( + { + "sepal_length": [5.1, 4.9, 4.7, 4.6, 5.0], + "species": ["setosa", "setosa", "setosa", "setosa", "setosa"], + } + ) + df._mgr.arrays[0].flags.writeable = False + + result = df.groupby(["species"]).agg({"sepal_length": agg}) + expected = df.copy().groupby(["species"]).agg({"sepal_length": agg}) + + tm.assert_equal(result, expected) + + +@pytest.mark.parametrize( + "op_name", + [ + "count", + "sum", + "std", + "var", + "sem", + "mean", + "median", + "prod", + "min", + "max", + ], +) +def test_cython_agg_nullable_int(op_name): + # ensure that the cython-based aggregations don't fail for nullable dtype + # (eg https://github.com/pandas-dev/pandas/issues/37415) + df = DataFrame( + { + "A": ["A", "B"] * 5, + "B": pd.array([1, 2, 3, 4, 5, 6, 7, 8, 9, pd.NA], dtype="Int64"), + } + ) + result = getattr(df.groupby("A")["B"], op_name)() + df2 = df.assign(B=df["B"].astype("float64")) + expected = getattr(df2.groupby("A")["B"], op_name)() + if op_name in ("mean", "median"): + convert_integer = False + else: + convert_integer = True + expected = expected.convert_dtypes(convert_integer=convert_integer) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("dtype", ["Int64", "Float64", "boolean"]) +def test_count_masked_returns_masked_dtype(dtype): + df = DataFrame( + { + "A": [1, 1], + "B": pd.array([1, pd.NA], dtype=dtype), + "C": pd.array([1, 1], dtype=dtype), + } + ) + result = df.groupby("A").count() + expected = DataFrame( + [[1, 2]], index=Index([1], name="A"), columns=["B", "C"], dtype="Int64" + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("with_na", [True, False]) +@pytest.mark.parametrize( + "op_name, action", + [ + # ("count", "always_int"), + ("sum", "large_int"), + # ("std", "always_float"), + ("var", "always_float"), + # ("sem", "always_float"), + ("mean", "always_float"), + ("median", "always_float"), + ("prod", "large_int"), + ("min", "preserve"), + ("max", "preserve"), + ("first", "preserve"), + ("last", "preserve"), + ], +) +@pytest.mark.parametrize( + "data", + [ + pd.array([1, 2, 3, 4], dtype="Int64"), + pd.array([1, 2, 3, 4], dtype="Int8"), + pd.array([0.1, 0.2, 0.3, 0.4], dtype="Float32"), + pd.array([0.1, 0.2, 0.3, 0.4], dtype="Float64"), + pd.array([True, True, False, False], dtype="boolean"), + ], +) +def test_cython_agg_EA_known_dtypes(data, op_name, action, with_na): + if with_na: + data[3] = pd.NA + + df = DataFrame({"key": ["a", "a", "b", "b"], "col": data}) + grouped = df.groupby("key") + + if action == "always_int": + # always Int64 + expected_dtype = pd.Int64Dtype() + elif action == "large_int": + # for any int/bool use Int64, for float preserve dtype + if is_float_dtype(data.dtype): + expected_dtype = data.dtype + elif is_integer_dtype(data.dtype): + # match the numpy dtype we'd get with the non-nullable analogue + expected_dtype = data.dtype + else: + expected_dtype = pd.Int64Dtype() + elif action == "always_float": + # for any int/bool use Float64, for float preserve dtype + if is_float_dtype(data.dtype): + expected_dtype = data.dtype + else: + expected_dtype = pd.Float64Dtype() + elif action == "preserve": + expected_dtype = data.dtype + + result = getattr(grouped, op_name)() + assert result["col"].dtype == expected_dtype + + result = grouped.aggregate(op_name) + assert result["col"].dtype == expected_dtype + + result = getattr(grouped["col"], op_name)() + assert result.dtype == expected_dtype + + result = grouped["col"].aggregate(op_name) + assert result.dtype == expected_dtype diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/aggregate/test_numba.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/aggregate/test_numba.py new file mode 100644 index 0000000000000000000000000000000000000000..fcd34f793c584869482350d7f02b4be354b20fee --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/aggregate/test_numba.py @@ -0,0 +1,402 @@ +import numpy as np +import pytest + +from pandas.compat import is_platform_arm +from pandas.errors import NumbaUtilError + +from pandas import ( + DataFrame, + Index, + NamedAgg, + Series, + option_context, +) +import pandas._testing as tm +from pandas.util.version import Version + +pytestmark = [pytest.mark.single_cpu] + +numba = pytest.importorskip("numba") +pytestmark.append( + pytest.mark.skipif( + Version(numba.__version__) == Version("0.61") and is_platform_arm(), + reason=f"Segfaults on ARM platforms with numba {numba.__version__}", + ) +) + + +def test_correct_function_signature(): + pytest.importorskip("numba") + + def incorrect_function(x): + return sum(x) * 2.7 + + data = DataFrame( + {"key": ["a", "a", "b", "b", "a"], "data": [1.0, 2.0, 3.0, 4.0, 5.0]}, + columns=["key", "data"], + ) + with pytest.raises(NumbaUtilError, match="The first 2"): + data.groupby("key").agg(incorrect_function, engine="numba") + + with pytest.raises(NumbaUtilError, match="The first 2"): + data.groupby("key")["data"].agg(incorrect_function, engine="numba") + + +def test_check_nopython_kwargs(): + pytest.importorskip("numba") + + def incorrect_function(values, index): + return sum(values) * 2.7 + + data = DataFrame( + {"key": ["a", "a", "b", "b", "a"], "data": [1.0, 2.0, 3.0, 4.0, 5.0]}, + columns=["key", "data"], + ) + with pytest.raises(NumbaUtilError, match="numba does not support"): + data.groupby("key").agg(incorrect_function, engine="numba", a=1) + + with pytest.raises(NumbaUtilError, match="numba does not support"): + data.groupby("key")["data"].agg(incorrect_function, engine="numba", a=1) + + +@pytest.mark.filterwarnings("ignore") +# Filter warnings when parallel=True and the function can't be parallelized by Numba +@pytest.mark.parametrize("jit", [True, False]) +@pytest.mark.parametrize("pandas_obj", ["Series", "DataFrame"]) +@pytest.mark.parametrize("as_index", [True, False]) +def test_numba_vs_cython(jit, pandas_obj, nogil, parallel, nopython, as_index): + pytest.importorskip("numba") + + def func_numba(values, index): + return np.mean(values) * 2.7 + + if jit: + # Test accepted jitted functions + import numba + + func_numba = numba.jit(func_numba) + + data = DataFrame( + {0: ["a", "a", "b", "b", "a"], 1: [1.0, 2.0, 3.0, 4.0, 5.0]}, columns=[0, 1] + ) + engine_kwargs = {"nogil": nogil, "parallel": parallel, "nopython": nopython} + grouped = data.groupby(0, as_index=as_index) + if pandas_obj == "Series": + grouped = grouped[1] + + result = grouped.agg(func_numba, engine="numba", engine_kwargs=engine_kwargs) + expected = grouped.agg(lambda x: np.mean(x) * 2.7, engine="cython") + + tm.assert_equal(result, expected) + + +@pytest.mark.filterwarnings("ignore") +# Filter warnings when parallel=True and the function can't be parallelized by Numba +@pytest.mark.parametrize("jit", [True, False]) +@pytest.mark.parametrize("pandas_obj", ["Series", "DataFrame"]) +def test_cache(jit, pandas_obj, nogil, parallel, nopython): + # Test that the functions are cached correctly if we switch functions + pytest.importorskip("numba") + + def func_1(values, index): + return np.mean(values) - 3.4 + + def func_2(values, index): + return np.mean(values) * 2.7 + + if jit: + import numba + + func_1 = numba.jit(func_1) + func_2 = numba.jit(func_2) + + data = DataFrame( + {0: ["a", "a", "b", "b", "a"], 1: [1.0, 2.0, 3.0, 4.0, 5.0]}, columns=[0, 1] + ) + engine_kwargs = {"nogil": nogil, "parallel": parallel, "nopython": nopython} + grouped = data.groupby(0) + if pandas_obj == "Series": + grouped = grouped[1] + + result = grouped.agg(func_1, engine="numba", engine_kwargs=engine_kwargs) + expected = grouped.agg(lambda x: np.mean(x) - 3.4, engine="cython") + tm.assert_equal(result, expected) + + # Add func_2 to the cache + result = grouped.agg(func_2, engine="numba", engine_kwargs=engine_kwargs) + expected = grouped.agg(lambda x: np.mean(x) * 2.7, engine="cython") + tm.assert_equal(result, expected) + + # Retest func_1 which should use the cache + result = grouped.agg(func_1, engine="numba", engine_kwargs=engine_kwargs) + expected = grouped.agg(lambda x: np.mean(x) - 3.4, engine="cython") + tm.assert_equal(result, expected) + + +def test_use_global_config(): + pytest.importorskip("numba") + + def func_1(values, index): + return np.mean(values) - 3.4 + + data = DataFrame( + {0: ["a", "a", "b", "b", "a"], 1: [1.0, 2.0, 3.0, 4.0, 5.0]}, columns=[0, 1] + ) + grouped = data.groupby(0) + expected = grouped.agg(func_1, engine="numba") + with option_context("compute.use_numba", True): + result = grouped.agg(func_1, engine=None) + tm.assert_frame_equal(expected, result) + + +@pytest.mark.parametrize( + "agg_kwargs", + [ + {"func": ["min", "max"]}, + {"func": "min"}, + {"func": {1: ["min", "max"], 2: "sum"}}, + {"bmin": NamedAgg(column=1, aggfunc="min")}, + ], +) +def test_multifunc_numba_vs_cython_frame(agg_kwargs): + pytest.importorskip("numba") + data = DataFrame( + { + 0: ["a", "a", "b", "b", "a"], + 1: [1.0, 2.0, 3.0, 4.0, 5.0], + 2: [1, 2, 3, 4, 5], + }, + columns=[0, 1, 2], + ) + grouped = data.groupby(0) + result = grouped.agg(**agg_kwargs, engine="numba") + expected = grouped.agg(**agg_kwargs, engine="cython") + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "agg_kwargs,expected_func", + [ + ({"func": lambda values, index: values.sum()}, "sum"), + # FIXME + pytest.param( + { + "func": [ + lambda values, index: values.sum(), + lambda values, index: values.min(), + ] + }, + ["sum", "min"], + marks=pytest.mark.xfail( + reason="This doesn't work yet! Fails in nopython pipeline!" + ), + ), + ], +) +def test_multifunc_numba_udf_frame(agg_kwargs, expected_func): + pytest.importorskip("numba") + data = DataFrame( + { + 0: ["a", "a", "b", "b", "a"], + 1: [1.0, 2.0, 3.0, 4.0, 5.0], + 2: [1, 2, 3, 4, 5], + }, + columns=[0, 1, 2], + ) + grouped = data.groupby(0) + result = grouped.agg(**agg_kwargs, engine="numba") + expected = grouped.agg(expected_func, engine="cython") + # check_dtype can be removed if GH 44952 is addressed + # Currently, UDFs still always return float64 while reductions can preserve dtype + tm.assert_frame_equal(result, expected, check_dtype=False) + + +@pytest.mark.parametrize( + "agg_kwargs", + [{"func": ["min", "max"]}, {"func": "min"}, {"min_val": "min", "max_val": "max"}], +) +def test_multifunc_numba_vs_cython_series(agg_kwargs): + pytest.importorskip("numba") + labels = ["a", "a", "b", "b", "a"] + data = Series([1.0, 2.0, 3.0, 4.0, 5.0]) + grouped = data.groupby(labels) + agg_kwargs["engine"] = "numba" + result = grouped.agg(**agg_kwargs) + agg_kwargs["engine"] = "cython" + expected = grouped.agg(**agg_kwargs) + if isinstance(expected, DataFrame): + tm.assert_frame_equal(result, expected) + else: + tm.assert_series_equal(result, expected) + + +@pytest.mark.single_cpu +@pytest.mark.parametrize( + "data,agg_kwargs", + [ + (Series([1.0, 2.0, 3.0, 4.0, 5.0]), {"func": ["min", "max"]}), + (Series([1.0, 2.0, 3.0, 4.0, 5.0]), {"func": "min"}), + ( + DataFrame( + {1: [1.0, 2.0, 3.0, 4.0, 5.0], 2: [1, 2, 3, 4, 5]}, columns=[1, 2] + ), + {"func": ["min", "max"]}, + ), + ( + DataFrame( + {1: [1.0, 2.0, 3.0, 4.0, 5.0], 2: [1, 2, 3, 4, 5]}, columns=[1, 2] + ), + {"func": "min"}, + ), + ( + DataFrame( + {1: [1.0, 2.0, 3.0, 4.0, 5.0], 2: [1, 2, 3, 4, 5]}, columns=[1, 2] + ), + {"func": {1: ["min", "max"], 2: "sum"}}, + ), + ( + DataFrame( + {1: [1.0, 2.0, 3.0, 4.0, 5.0], 2: [1, 2, 3, 4, 5]}, columns=[1, 2] + ), + {"min_col": NamedAgg(column=1, aggfunc="min")}, + ), + ], +) +def test_multifunc_numba_kwarg_propagation(data, agg_kwargs): + pytest.importorskip("numba") + labels = ["a", "a", "b", "b", "a"] + grouped = data.groupby(labels) + result = grouped.agg(**agg_kwargs, engine="numba", engine_kwargs={"parallel": True}) + expected = grouped.agg(**agg_kwargs, engine="numba") + if isinstance(expected, DataFrame): + tm.assert_frame_equal(result, expected) + else: + tm.assert_series_equal(result, expected) + + +def test_args_not_cached(): + # GH 41647 + pytest.importorskip("numba") + + def sum_last(values, index, n): + return values[-n:].sum() + + df = DataFrame({"id": [0, 0, 1, 1], "x": [1, 1, 1, 1]}) + grouped_x = df.groupby("id")["x"] + result = grouped_x.agg(sum_last, 1, engine="numba") + expected = Series([1.0] * 2, name="x", index=Index([0, 1], name="id")) + tm.assert_series_equal(result, expected) + + result = grouped_x.agg(sum_last, 2, engine="numba") + expected = Series([2.0] * 2, name="x", index=Index([0, 1], name="id")) + tm.assert_series_equal(result, expected) + + +def test_index_data_correctly_passed(): + # GH 43133 + pytest.importorskip("numba") + + def f(values, index): + return np.mean(index) + + df = DataFrame({"group": ["A", "A", "B"], "v": [4, 5, 6]}, index=[-1, -2, -3]) + result = df.groupby("group").aggregate(f, engine="numba") + expected = DataFrame( + [-1.5, -3.0], columns=["v"], index=Index(["A", "B"], name="group") + ) + tm.assert_frame_equal(result, expected) + + +def test_engine_kwargs_not_cached(): + # If the user passes a different set of engine_kwargs don't return the same + # jitted function + pytest.importorskip("numba") + nogil = True + parallel = False + nopython = True + + def func_kwargs(values, index): + return nogil + parallel + nopython + + engine_kwargs = {"nopython": nopython, "nogil": nogil, "parallel": parallel} + df = DataFrame({"value": [0, 0, 0]}) + result = df.groupby(level=0).aggregate( + func_kwargs, engine="numba", engine_kwargs=engine_kwargs + ) + expected = DataFrame({"value": [2.0, 2.0, 2.0]}) + tm.assert_frame_equal(result, expected) + + nogil = False + engine_kwargs = {"nopython": nopython, "nogil": nogil, "parallel": parallel} + result = df.groupby(level=0).aggregate( + func_kwargs, engine="numba", engine_kwargs=engine_kwargs + ) + expected = DataFrame({"value": [1.0, 1.0, 1.0]}) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.filterwarnings("ignore") +def test_multiindex_one_key(nogil, parallel, nopython): + pytest.importorskip("numba") + + def numba_func(values, index): + return 1 + + df = DataFrame([{"A": 1, "B": 2, "C": 3}]).set_index(["A", "B"]) + engine_kwargs = {"nopython": nopython, "nogil": nogil, "parallel": parallel} + result = df.groupby("A").agg( + numba_func, engine="numba", engine_kwargs=engine_kwargs + ) + expected = DataFrame([1.0], index=Index([1], name="A"), columns=["C"]) + tm.assert_frame_equal(result, expected) + + +def test_multiindex_multi_key_not_supported(nogil, parallel, nopython): + pytest.importorskip("numba") + + def numba_func(values, index): + return 1 + + df = DataFrame([{"A": 1, "B": 2, "C": 3}]).set_index(["A", "B"]) + engine_kwargs = {"nopython": nopython, "nogil": nogil, "parallel": parallel} + with pytest.raises(NotImplementedError, match="more than 1 grouping labels"): + df.groupby(["A", "B"]).agg( + numba_func, engine="numba", engine_kwargs=engine_kwargs + ) + + +def test_multilabel_numba_vs_cython(numba_supported_reductions): + pytest.importorskip("numba") + reduction, kwargs = numba_supported_reductions + df = DataFrame( + { + "A": ["foo", "bar", "foo", "bar", "foo", "bar", "foo", "foo"], + "B": ["one", "one", "two", "three", "two", "two", "one", "three"], + "C": np.random.default_rng(2).standard_normal(8), + "D": np.random.default_rng(2).standard_normal(8), + } + ) + gb = df.groupby(["A", "B"]) + res_agg = gb.agg(reduction, engine="numba", **kwargs) + expected_agg = gb.agg(reduction, engine="cython", **kwargs) + tm.assert_frame_equal(res_agg, expected_agg) + # Test that calling the aggregation directly also works + direct_res = getattr(gb, reduction)(engine="numba", **kwargs) + direct_expected = getattr(gb, reduction)(engine="cython", **kwargs) + tm.assert_frame_equal(direct_res, direct_expected) + + +def test_multilabel_udf_numba_vs_cython(): + pytest.importorskip("numba") + df = DataFrame( + { + "A": ["foo", "bar", "foo", "bar", "foo", "bar", "foo", "foo"], + "B": ["one", "one", "two", "three", "two", "two", "one", "three"], + "C": np.random.default_rng(2).standard_normal(8), + "D": np.random.default_rng(2).standard_normal(8), + } + ) + gb = df.groupby(["A", "B"]) + result = gb.agg(lambda values, index: values.min(), engine="numba") + expected = gb.agg(lambda x: x.min(), engine="cython") + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/aggregate/test_other.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/aggregate/test_other.py new file mode 100644 index 0000000000000000000000000000000000000000..213704f31aca526bc54f9319c941b8657c1e947e --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/aggregate/test_other.py @@ -0,0 +1,676 @@ +""" +test all other .agg behavior +""" + +import datetime as dt +from functools import partial + +import numpy as np +import pytest + +from pandas.errors import SpecificationError + +import pandas as pd +from pandas import ( + DataFrame, + Index, + MultiIndex, + PeriodIndex, + Series, + date_range, + period_range, +) +import pandas._testing as tm + +from pandas.io.formats.printing import pprint_thing + + +def test_agg_partial_failure_raises(): + # GH#43741 + + df = DataFrame( + { + "data1": np.random.default_rng(2).standard_normal(5), + "data2": np.random.default_rng(2).standard_normal(5), + "key1": ["a", "a", "b", "b", "a"], + "key2": ["one", "two", "one", "two", "one"], + } + ) + grouped = df.groupby("key1") + + def peak_to_peak(arr): + return arr.max() - arr.min() + + with pytest.raises(TypeError, match="unsupported operand type"): + grouped.agg([peak_to_peak]) + + with pytest.raises(TypeError, match="unsupported operand type"): + grouped.agg(peak_to_peak) + + +def test_agg_datetimes_mixed(): + data = [[1, "2012-01-01", 1.0], [2, "2012-01-02", 2.0], [3, None, 3.0]] + + df1 = DataFrame( + { + "key": [x[0] for x in data], + "date": [x[1] for x in data], + "value": [x[2] for x in data], + } + ) + + data = [ + [ + row[0], + (dt.datetime.strptime(row[1], "%Y-%m-%d").date() if row[1] else None), + row[2], + ] + for row in data + ] + + df2 = DataFrame( + { + "key": [x[0] for x in data], + "date": [x[1] for x in data], + "value": [x[2] for x in data], + } + ) + + df1["weights"] = df1["value"] / df1["value"].sum() + gb1 = df1.groupby("date").aggregate("sum") + + df2["weights"] = df1["value"] / df1["value"].sum() + gb2 = df2.groupby("date").aggregate("sum") + + assert len(gb1) == len(gb2) + + +def test_agg_period_index(): + prng = period_range("2012-1-1", freq="M", periods=3) + df = DataFrame(np.random.default_rng(2).standard_normal((3, 2)), index=prng) + rs = df.groupby(level=0).sum() + assert isinstance(rs.index, PeriodIndex) + + # GH 3579 + index = period_range(start="1999-01", periods=5, freq="M") + s1 = Series(np.random.default_rng(2).random(len(index)), index=index) + s2 = Series(np.random.default_rng(2).random(len(index)), index=index) + df = DataFrame.from_dict({"s1": s1, "s2": s2}) + grouped = df.groupby(df.index.month) + list(grouped) + + +def test_agg_dict_parameter_cast_result_dtypes(): + # GH 12821 + + df = DataFrame( + { + "class": ["A", "A", "B", "B", "C", "C", "D", "D"], + "time": date_range("1/1/2011", periods=8, freq="h"), + } + ) + df.loc[[0, 1, 2, 5], "time"] = None + + # test for `first` function + exp = df.loc[[0, 3, 4, 6]].set_index("class") + grouped = df.groupby("class") + tm.assert_frame_equal(grouped.first(), exp) + tm.assert_frame_equal(grouped.agg("first"), exp) + tm.assert_frame_equal(grouped.agg({"time": "first"}), exp) + tm.assert_series_equal(grouped.time.first(), exp["time"]) + tm.assert_series_equal(grouped.time.agg("first"), exp["time"]) + + # test for `last` function + exp = df.loc[[0, 3, 4, 7]].set_index("class") + grouped = df.groupby("class") + tm.assert_frame_equal(grouped.last(), exp) + tm.assert_frame_equal(grouped.agg("last"), exp) + tm.assert_frame_equal(grouped.agg({"time": "last"}), exp) + tm.assert_series_equal(grouped.time.last(), exp["time"]) + tm.assert_series_equal(grouped.time.agg("last"), exp["time"]) + + # count + exp = Series([2, 2, 2, 2], index=Index(list("ABCD"), name="class"), name="time") + tm.assert_series_equal(grouped.time.agg(len), exp) + tm.assert_series_equal(grouped.time.size(), exp) + + exp = Series([0, 1, 1, 2], index=Index(list("ABCD"), name="class"), name="time") + tm.assert_series_equal(grouped.time.count(), exp) + + +def test_agg_cast_results_dtypes(): + # similar to GH12821 + # xref #11444 + u = [dt.datetime(2015, x + 1, 1) for x in range(12)] + v = list("aaabbbbbbccd") + df = DataFrame({"X": v, "Y": u}) + + result = df.groupby("X")["Y"].agg(len) + expected = df.groupby("X")["Y"].count() + tm.assert_series_equal(result, expected) + + +def test_aggregate_float64_no_int64(): + # see gh-11199 + df = DataFrame({"a": [1, 2, 3, 4, 5], "b": [1, 2, 2, 4, 5], "c": [1, 2, 3, 4, 5]}) + + expected = DataFrame({"a": [1, 2.5, 4, 5]}, index=[1, 2, 4, 5]) + expected.index.name = "b" + + result = df.groupby("b")[["a"]].mean() + tm.assert_frame_equal(result, expected) + + expected = DataFrame({"a": [1, 2.5, 4, 5], "c": [1, 2.5, 4, 5]}, index=[1, 2, 4, 5]) + expected.index.name = "b" + + result = df.groupby("b")[["a", "c"]].mean() + tm.assert_frame_equal(result, expected) + + +def test_aggregate_api_consistency(): + # GH 9052 + # make sure that the aggregates via dict + # are consistent + df = DataFrame( + { + "A": ["foo", "bar", "foo", "bar", "foo", "bar", "foo", "foo"], + "B": ["one", "one", "two", "two", "two", "two", "one", "two"], + "C": np.random.default_rng(2).standard_normal(8) + 1.0, + "D": np.arange(8), + } + ) + + grouped = df.groupby(["A", "B"]) + c_mean = grouped["C"].mean() + c_sum = grouped["C"].sum() + d_mean = grouped["D"].mean() + d_sum = grouped["D"].sum() + + result = grouped["D"].agg(["sum", "mean"]) + expected = pd.concat([d_sum, d_mean], axis=1) + expected.columns = ["sum", "mean"] + tm.assert_frame_equal(result, expected, check_like=True) + + result = grouped.agg(["sum", "mean"]) + expected = pd.concat([c_sum, c_mean, d_sum, d_mean], axis=1) + expected.columns = MultiIndex.from_product([["C", "D"], ["sum", "mean"]]) + tm.assert_frame_equal(result, expected, check_like=True) + + result = grouped[["D", "C"]].agg(["sum", "mean"]) + expected = pd.concat([d_sum, d_mean, c_sum, c_mean], axis=1) + expected.columns = MultiIndex.from_product([["D", "C"], ["sum", "mean"]]) + tm.assert_frame_equal(result, expected, check_like=True) + + result = grouped.agg({"C": "mean", "D": "sum"}) + expected = pd.concat([d_sum, c_mean], axis=1) + tm.assert_frame_equal(result, expected, check_like=True) + + result = grouped.agg({"C": ["mean", "sum"], "D": ["mean", "sum"]}) + expected = pd.concat([c_mean, c_sum, d_mean, d_sum], axis=1) + expected.columns = MultiIndex.from_product([["C", "D"], ["mean", "sum"]]) + + msg = r"Column\(s\) \['r', 'r2'\] do not exist" + with pytest.raises(KeyError, match=msg): + grouped[["D", "C"]].agg({"r": "sum", "r2": "mean"}) + + +def test_agg_dict_renaming_deprecation(): + # 15931 + df = DataFrame({"A": [1, 1, 1, 2, 2], "B": range(5), "C": range(5)}) + + msg = r"nested renamer is not supported" + with pytest.raises(SpecificationError, match=msg): + df.groupby("A").agg( + {"B": {"foo": ["sum", "max"]}, "C": {"bar": ["count", "min"]}} + ) + + msg = r"Column\(s\) \['ma'\] do not exist" + with pytest.raises(KeyError, match=msg): + df.groupby("A")[["B", "C"]].agg({"ma": "max"}) + + msg = r"nested renamer is not supported" + with pytest.raises(SpecificationError, match=msg): + df.groupby("A").B.agg({"foo": "count"}) + + +def test_agg_compat(): + # GH 12334 + df = DataFrame( + { + "A": ["foo", "bar", "foo", "bar", "foo", "bar", "foo", "foo"], + "B": ["one", "one", "two", "two", "two", "two", "one", "two"], + "C": np.random.default_rng(2).standard_normal(8) + 1.0, + "D": np.arange(8), + } + ) + + g = df.groupby(["A", "B"]) + + msg = r"nested renamer is not supported" + with pytest.raises(SpecificationError, match=msg): + g["D"].agg({"C": ["sum", "std"]}) + + with pytest.raises(SpecificationError, match=msg): + g["D"].agg({"C": "sum", "D": "std"}) + + +def test_agg_nested_dicts(): + # API change for disallowing these types of nested dicts + df = DataFrame( + { + "A": ["foo", "bar", "foo", "bar", "foo", "bar", "foo", "foo"], + "B": ["one", "one", "two", "two", "two", "two", "one", "two"], + "C": np.random.default_rng(2).standard_normal(8) + 1.0, + "D": np.arange(8), + } + ) + + g = df.groupby(["A", "B"]) + + msg = r"nested renamer is not supported" + with pytest.raises(SpecificationError, match=msg): + g.aggregate({"r1": {"C": ["mean", "sum"]}, "r2": {"D": ["mean", "sum"]}}) + + with pytest.raises(SpecificationError, match=msg): + g.agg({"C": {"ra": ["mean", "std"]}, "D": {"rb": ["mean", "std"]}}) + + # same name as the original column + # GH9052 + with pytest.raises(SpecificationError, match=msg): + g["D"].agg({"result1": np.sum, "result2": np.mean}) + + with pytest.raises(SpecificationError, match=msg): + g["D"].agg({"D": np.sum, "result2": np.mean}) + + +def test_agg_item_by_item_raise_typeerror(): + df = DataFrame(np.random.default_rng(2).integers(10, size=(20, 10))) + + def raiseException(df): + pprint_thing("----------------------------------------") + pprint_thing(df.to_string()) + raise TypeError("test") + + with pytest.raises(TypeError, match="test"): + df.groupby(0).agg(raiseException) + + +def test_series_agg_multikey(): + ts = Series( + np.arange(10, dtype=np.float64), index=date_range("2020-01-01", periods=10) + ) + grouped = ts.groupby([lambda x: x.year, lambda x: x.month]) + + result = grouped.agg("sum") + expected = grouped.sum() + tm.assert_series_equal(result, expected) + + +def test_series_agg_multi_pure_python(): + data = DataFrame( + { + "A": [ + "foo", + "foo", + "foo", + "foo", + "bar", + "bar", + "bar", + "bar", + "foo", + "foo", + "foo", + ], + "B": [ + "one", + "one", + "one", + "two", + "one", + "one", + "one", + "two", + "two", + "two", + "one", + ], + "C": [ + "dull", + "dull", + "shiny", + "dull", + "dull", + "shiny", + "shiny", + "dull", + "shiny", + "shiny", + "shiny", + ], + "D": np.random.default_rng(2).standard_normal(11), + "E": np.random.default_rng(2).standard_normal(11), + "F": np.random.default_rng(2).standard_normal(11), + } + ) + + def bad(x): + if isinstance(x.values, np.ndarray): + assert len(x.values.base) > 0 + return "foo" + + result = data.groupby(["A", "B"]).agg(bad) + expected = data.groupby(["A", "B"]).agg(lambda x: "foo") + tm.assert_frame_equal(result, expected) + + +def test_agg_consistency(): + # agg with ([]) and () not consistent + # GH 6715 + def P1(a): + return np.percentile(a.dropna(), q=1) + + df = DataFrame( + { + "col1": [1, 2, 3, 4], + "col2": [10, 25, 26, 31], + "date": [ + dt.date(2013, 2, 10), + dt.date(2013, 2, 10), + dt.date(2013, 2, 11), + dt.date(2013, 2, 11), + ], + } + ) + + g = df.groupby("date") + + expected = g.agg([P1]) + expected.columns = expected.columns.levels[0] + + result = g.agg(P1) + tm.assert_frame_equal(result, expected) + + +def test_agg_callables(): + # GH 7929 + df = DataFrame({"foo": [1, 2], "bar": [3, 4]}).astype(np.int64) + + class fn_class: + def __call__(self, x): + return sum(x) + + equiv_callables = [ + sum, + np.sum, + lambda x: sum(x), + lambda x: x.sum(), + partial(sum), + fn_class(), + ] + + expected = df.groupby("foo").agg("sum") + for ecall in equiv_callables: + warn = FutureWarning if ecall is sum or ecall is np.sum else None + msg = "using DataFrameGroupBy.sum" + with tm.assert_produces_warning(warn, match=msg): + result = df.groupby("foo").agg(ecall) + tm.assert_frame_equal(result, expected) + + +def test_agg_over_numpy_arrays(): + # GH 3788 + df = DataFrame( + [ + [1, np.array([10, 20, 30])], + [1, np.array([40, 50, 60])], + [2, np.array([20, 30, 40])], + ], + columns=["category", "arraydata"], + ) + gb = df.groupby("category") + + expected_data = [[np.array([50, 70, 90])], [np.array([20, 30, 40])]] + expected_index = Index([1, 2], name="category") + expected_column = ["arraydata"] + expected = DataFrame(expected_data, index=expected_index, columns=expected_column) + + alt = gb.sum(numeric_only=False) + tm.assert_frame_equal(alt, expected) + + result = gb.agg("sum", numeric_only=False) + tm.assert_frame_equal(result, expected) + + # FIXME: the original version of this test called `gb.agg(sum)` + # and that raises TypeError if `numeric_only=False` is passed + + +@pytest.mark.parametrize("as_period", [True, False]) +def test_agg_tzaware_non_datetime_result(as_period): + # discussed in GH#29589, fixed in GH#29641, operating on tzaware values + # with function that is not dtype-preserving + dti = date_range("2012-01-01", periods=4, tz="UTC") + if as_period: + dti = dti.tz_localize(None).to_period("D") + + df = DataFrame({"a": [0, 0, 1, 1], "b": dti}) + gb = df.groupby("a") + + # Case that _does_ preserve the dtype + result = gb["b"].agg(lambda x: x.iloc[0]) + expected = Series(dti[::2], name="b") + expected.index.name = "a" + tm.assert_series_equal(result, expected) + + # Cases that do _not_ preserve the dtype + result = gb["b"].agg(lambda x: x.iloc[0].year) + expected = Series([2012, 2012], name="b") + expected.index.name = "a" + tm.assert_series_equal(result, expected) + + result = gb["b"].agg(lambda x: x.iloc[-1] - x.iloc[0]) + expected = Series([pd.Timedelta(days=1), pd.Timedelta(days=1)], name="b") + expected.index.name = "a" + if as_period: + expected = Series([pd.offsets.Day(1), pd.offsets.Day(1)], name="b") + expected.index.name = "a" + tm.assert_series_equal(result, expected) + + +def test_agg_timezone_round_trip(): + # GH 15426 + ts = pd.Timestamp("2016-01-01 12:00:00", tz="US/Pacific") + df = DataFrame({"a": 1, "b": [ts + dt.timedelta(minutes=nn) for nn in range(10)]}) + + result1 = df.groupby("a")["b"].agg("min").iloc[0] + result2 = df.groupby("a")["b"].agg(lambda x: np.min(x)).iloc[0] + result3 = df.groupby("a")["b"].min().iloc[0] + + assert result1 == ts + assert result2 == ts + assert result3 == ts + + dates = [ + pd.Timestamp(f"2016-01-0{i:d} 12:00:00", tz="US/Pacific") for i in range(1, 5) + ] + df = DataFrame({"A": ["a", "b"] * 2, "B": dates}) + grouped = df.groupby("A") + + ts = df["B"].iloc[0] + assert ts == grouped.nth(0)["B"].iloc[0] + assert ts == grouped.head(1)["B"].iloc[0] + assert ts == grouped.first()["B"].iloc[0] + + # GH#27110 applying iloc should return a DataFrame + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + assert ts == grouped.apply(lambda x: x.iloc[0]).iloc[0, 1] + + ts = df["B"].iloc[2] + assert ts == grouped.last()["B"].iloc[0] + + # GH#27110 applying iloc should return a DataFrame + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + assert ts == grouped.apply(lambda x: x.iloc[-1]).iloc[0, 1] + + +def test_sum_uint64_overflow(): + # see gh-14758 + # Convert to uint64 and don't overflow + df = DataFrame([[1, 2], [3, 4], [5, 6]], dtype=object) + df = df + 9223372036854775807 + + index = Index( + [9223372036854775808, 9223372036854775810, 9223372036854775812], dtype=np.uint64 + ) + expected = DataFrame( + {1: [9223372036854775809, 9223372036854775811, 9223372036854775813]}, + index=index, + dtype=object, + ) + + expected.index.name = 0 + result = df.groupby(0).sum(numeric_only=False) + tm.assert_frame_equal(result, expected) + + # out column is non-numeric, so with numeric_only=True it is dropped + result2 = df.groupby(0).sum(numeric_only=True) + expected2 = expected[[]] + tm.assert_frame_equal(result2, expected2) + + +@pytest.mark.parametrize( + "structure, expected", + [ + (tuple, DataFrame({"C": {(1, 1): (1, 1, 1), (3, 4): (3, 4, 4)}})), + (list, DataFrame({"C": {(1, 1): [1, 1, 1], (3, 4): [3, 4, 4]}})), + ( + lambda x: tuple(x), + DataFrame({"C": {(1, 1): (1, 1, 1), (3, 4): (3, 4, 4)}}), + ), + ( + lambda x: list(x), + DataFrame({"C": {(1, 1): [1, 1, 1], (3, 4): [3, 4, 4]}}), + ), + ], +) +def test_agg_structs_dataframe(structure, expected): + df = DataFrame( + {"A": [1, 1, 1, 3, 3, 3], "B": [1, 1, 1, 4, 4, 4], "C": [1, 1, 1, 3, 4, 4]} + ) + + result = df.groupby(["A", "B"]).aggregate(structure) + expected.index.names = ["A", "B"] + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "structure, expected", + [ + (tuple, Series([(1, 1, 1), (3, 4, 4)], index=[1, 3], name="C")), + (list, Series([[1, 1, 1], [3, 4, 4]], index=[1, 3], name="C")), + (lambda x: tuple(x), Series([(1, 1, 1), (3, 4, 4)], index=[1, 3], name="C")), + (lambda x: list(x), Series([[1, 1, 1], [3, 4, 4]], index=[1, 3], name="C")), + ], +) +def test_agg_structs_series(structure, expected): + # Issue #18079 + df = DataFrame( + {"A": [1, 1, 1, 3, 3, 3], "B": [1, 1, 1, 4, 4, 4], "C": [1, 1, 1, 3, 4, 4]} + ) + + result = df.groupby("A")["C"].aggregate(structure) + expected.index.name = "A" + tm.assert_series_equal(result, expected) + + +def test_agg_category_nansum(observed): + categories = ["a", "b", "c"] + df = DataFrame( + {"A": pd.Categorical(["a", "a", "b"], categories=categories), "B": [1, 2, 3]} + ) + msg = "using SeriesGroupBy.sum" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("A", observed=observed).B.agg(np.nansum) + expected = Series( + [3, 3, 0], + index=pd.CategoricalIndex(["a", "b", "c"], categories=categories, name="A"), + name="B", + ) + if observed: + expected = expected[expected != 0] + tm.assert_series_equal(result, expected) + + +def test_agg_list_like_func(): + # GH 18473 + df = DataFrame({"A": [str(x) for x in range(3)], "B": [str(x) for x in range(3)]}) + grouped = df.groupby("A", as_index=False, sort=False) + result = grouped.agg({"B": lambda x: list(x)}) + expected = DataFrame( + {"A": [str(x) for x in range(3)], "B": [[str(x)] for x in range(3)]} + ) + tm.assert_frame_equal(result, expected) + + +def test_agg_lambda_with_timezone(): + # GH 23683 + df = DataFrame( + { + "tag": [1, 1], + "date": [ + pd.Timestamp("2018-01-01", tz="UTC"), + pd.Timestamp("2018-01-02", tz="UTC"), + ], + } + ) + result = df.groupby("tag").agg({"date": lambda e: e.head(1)}) + expected = DataFrame( + [pd.Timestamp("2018-01-01", tz="UTC")], + index=Index([1], name="tag"), + columns=["date"], + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "err_cls", + [ + NotImplementedError, + RuntimeError, + KeyError, + IndexError, + OSError, + ValueError, + ArithmeticError, + AttributeError, + ], +) +def test_groupby_agg_err_catching(err_cls): + # make sure we suppress anything other than TypeError or AssertionError + # in _python_agg_general + + # Use a non-standard EA to make sure we don't go down ndarray paths + from pandas.tests.extension.decimal.array import ( + DecimalArray, + make_data, + to_decimal, + ) + + data = make_data()[:5] + df = DataFrame( + {"id1": [0, 0, 0, 1, 1], "id2": [0, 1, 0, 1, 1], "decimals": DecimalArray(data)} + ) + + expected = Series(to_decimal([data[0], data[3]])) + + def weird_func(x): + # weird function that raise something other than TypeError or IndexError + # in _python_agg_general + if len(x) == 0: + raise err_cls + return x.iloc[0] + + result = df["decimals"].groupby(df["id1"]).agg(weird_func) + tm.assert_series_equal(result, expected, check_names=False) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/conftest.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/conftest.py new file mode 100644 index 0000000000000000000000000000000000000000..dce3f072ed903ace4cb014f63d60ffde84c9bf4c --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/conftest.py @@ -0,0 +1,208 @@ +import numpy as np +import pytest + +from pandas import ( + DataFrame, + Index, + Series, + date_range, +) +from pandas.core.groupby.base import ( + reduction_kernels, + transformation_kernels, +) + + +@pytest.fixture(params=[True, False]) +def sort(request): + return request.param + + +@pytest.fixture(params=[True, False]) +def as_index(request): + return request.param + + +@pytest.fixture(params=[True, False]) +def dropna(request): + return request.param + + +@pytest.fixture(params=[True, False]) +def observed(request): + return request.param + + +@pytest.fixture +def df(): + return DataFrame( + { + "A": ["foo", "bar", "foo", "bar", "foo", "bar", "foo", "foo"], + "B": ["one", "one", "two", "three", "two", "two", "one", "three"], + "C": np.random.default_rng(2).standard_normal(8), + "D": np.random.default_rng(2).standard_normal(8), + } + ) + + +@pytest.fixture +def ts(): + return Series( + np.random.default_rng(2).standard_normal(30), + index=date_range("2000-01-01", periods=30, freq="B"), + ) + + +@pytest.fixture +def tsframe(): + return DataFrame( + np.random.default_rng(2).standard_normal((30, 4)), + columns=Index(list("ABCD"), dtype=object), + index=date_range("2000-01-01", periods=30, freq="B"), + ) + + +@pytest.fixture +def three_group(): + return DataFrame( + { + "A": [ + "foo", + "foo", + "foo", + "foo", + "bar", + "bar", + "bar", + "bar", + "foo", + "foo", + "foo", + ], + "B": [ + "one", + "one", + "one", + "two", + "one", + "one", + "one", + "two", + "two", + "two", + "one", + ], + "C": [ + "dull", + "dull", + "shiny", + "dull", + "dull", + "shiny", + "shiny", + "dull", + "shiny", + "shiny", + "shiny", + ], + "D": np.random.default_rng(2).standard_normal(11), + "E": np.random.default_rng(2).standard_normal(11), + "F": np.random.default_rng(2).standard_normal(11), + } + ) + + +@pytest.fixture() +def slice_test_df(): + data = [ + [0, "a", "a0_at_0"], + [1, "b", "b0_at_1"], + [2, "a", "a1_at_2"], + [3, "b", "b1_at_3"], + [4, "c", "c0_at_4"], + [5, "a", "a2_at_5"], + [6, "a", "a3_at_6"], + [7, "a", "a4_at_7"], + ] + df = DataFrame(data, columns=["Index", "Group", "Value"]) + return df.set_index("Index") + + +@pytest.fixture() +def slice_test_grouped(slice_test_df): + return slice_test_df.groupby("Group", as_index=False) + + +@pytest.fixture(params=sorted(reduction_kernels)) +def reduction_func(request): + """ + yields the string names of all groupby reduction functions, one at a time. + """ + return request.param + + +@pytest.fixture(params=sorted(transformation_kernels)) +def transformation_func(request): + """yields the string names of all groupby transformation functions.""" + return request.param + + +@pytest.fixture(params=sorted(reduction_kernels) + sorted(transformation_kernels)) +def groupby_func(request): + """yields both aggregation and transformation functions.""" + return request.param + + +@pytest.fixture(params=[True, False]) +def parallel(request): + """parallel keyword argument for numba.jit""" + return request.param + + +# Can parameterize nogil & nopython over True | False, but limiting per +# https://github.com/pandas-dev/pandas/pull/41971#issuecomment-860607472 + + +@pytest.fixture(params=[False]) +def nogil(request): + """nogil keyword argument for numba.jit""" + return request.param + + +@pytest.fixture(params=[True]) +def nopython(request): + """nopython keyword argument for numba.jit""" + return request.param + + +@pytest.fixture( + params=[ + ("mean", {}), + ("var", {"ddof": 1}), + ("var", {"ddof": 0}), + ("std", {"ddof": 1}), + ("std", {"ddof": 0}), + ("sum", {}), + ("min", {}), + ("max", {}), + ("sum", {"min_count": 2}), + ("min", {"min_count": 2}), + ("max", {"min_count": 2}), + ], + ids=[ + "mean", + "var_1", + "var_0", + "std_1", + "std_0", + "sum", + "min", + "max", + "sum-min_count", + "min-min_count", + "max-min_count", + ], +) +def numba_supported_reductions(request): + """reductions supported with engine='numba'""" + return request.param diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_corrwith.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_corrwith.py new file mode 100644 index 0000000000000000000000000000000000000000..53e8bdc4534dc66dc1b68e603b2af431d0c0b209 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_corrwith.py @@ -0,0 +1,24 @@ +import numpy as np + +from pandas import ( + DataFrame, + Index, + Series, +) +import pandas._testing as tm + + +def test_corrwith_with_1_axis(): + # GH 47723 + df = DataFrame({"a": [1, 1, 2], "b": [3, 7, 4]}) + gb = df.groupby("a") + + msg = "DataFrameGroupBy.corrwith with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = gb.corrwith(df, axis=1) + index = Index( + data=[(1, 0), (1, 1), (1, 2), (2, 2), (2, 0), (2, 1)], + name=("a", None), + ) + expected = Series([np.nan] * 6, index=index) + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_describe.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_describe.py new file mode 100644 index 0000000000000000000000000000000000000000..c0889ab415e744ca57af2797d2b0211431a63196 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_describe.py @@ -0,0 +1,301 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + DataFrame, + Index, + MultiIndex, + Series, + Timestamp, + date_range, +) +import pandas._testing as tm + + +def test_apply_describe_bug(multiindex_dataframe_random_data): + grouped = multiindex_dataframe_random_data.groupby(level="first") + grouped.describe() # it works! + + +def test_series_describe_multikey(): + ts = Series( + np.arange(10, dtype=np.float64), index=date_range("2020-01-01", periods=10) + ) + grouped = ts.groupby([lambda x: x.year, lambda x: x.month]) + result = grouped.describe() + tm.assert_series_equal(result["mean"], grouped.mean(), check_names=False) + tm.assert_series_equal(result["std"], grouped.std(), check_names=False) + tm.assert_series_equal(result["min"], grouped.min(), check_names=False) + + +def test_series_describe_single(): + ts = Series( + np.arange(10, dtype=np.float64), index=date_range("2020-01-01", periods=10) + ) + grouped = ts.groupby(lambda x: x.month) + result = grouped.apply(lambda x: x.describe()) + expected = grouped.describe().stack(future_stack=True) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("keys", ["key1", ["key1", "key2"]]) +def test_series_describe_as_index(as_index, keys): + # GH#49256 + df = DataFrame( + { + "key1": ["one", "two", "two", "three", "two"], + "key2": ["one", "two", "two", "three", "two"], + "foo2": [1, 2, 4, 4, 6], + } + ) + gb = df.groupby(keys, as_index=as_index)["foo2"] + result = gb.describe() + expected = DataFrame( + { + "key1": ["one", "three", "two"], + "count": [1.0, 1.0, 3.0], + "mean": [1.0, 4.0, 4.0], + "std": [np.nan, np.nan, 2.0], + "min": [1.0, 4.0, 2.0], + "25%": [1.0, 4.0, 3.0], + "50%": [1.0, 4.0, 4.0], + "75%": [1.0, 4.0, 5.0], + "max": [1.0, 4.0, 6.0], + } + ) + if len(keys) == 2: + expected.insert(1, "key2", expected["key1"]) + if as_index: + expected = expected.set_index(keys) + tm.assert_frame_equal(result, expected) + + +def test_frame_describe_multikey(tsframe, using_infer_string): + grouped = tsframe.groupby([lambda x: x.year, lambda x: x.month]) + result = grouped.describe() + desc_groups = [] + for col in tsframe: + group = grouped[col].describe() + # GH 17464 - Remove duplicate MultiIndex levels + group_col = MultiIndex( + levels=[Index([col], dtype=tsframe.columns.dtype), group.columns], + codes=[[0] * len(group.columns), range(len(group.columns))], + ) + group = DataFrame(group.values, columns=group_col, index=group.index) + desc_groups.append(group) + expected = pd.concat(desc_groups, axis=1) + tm.assert_frame_equal(result, expected) + + # remainder of the tests fails with string dtype but is testing deprecated behaviour + if using_infer_string: + return + + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + groupedT = tsframe.groupby({"A": 0, "B": 0, "C": 1, "D": 1}, axis=1) + result = groupedT.describe() + expected = tsframe.describe().T + # reverting the change from https://github.com/pandas-dev/pandas/pull/35441/ + expected.index = MultiIndex( + levels=[[0, 1], expected.index], + codes=[[0, 0, 1, 1], range(len(expected.index))], + ) + tm.assert_frame_equal(result, expected) + + +def test_frame_describe_tupleindex(): + # GH 14848 - regression from 0.19.0 to 0.19.1 + df1 = DataFrame( + { + "x": [1, 2, 3, 4, 5] * 3, + "y": [10, 20, 30, 40, 50] * 3, + "z": [100, 200, 300, 400, 500] * 3, + } + ) + df1["k"] = [(0, 0, 1), (0, 1, 0), (1, 0, 0)] * 5 + df2 = df1.rename(columns={"k": "key"}) + msg = "Names should be list-like for a MultiIndex" + with pytest.raises(ValueError, match=msg): + df1.groupby("k").describe() + with pytest.raises(ValueError, match=msg): + df2.groupby("key").describe() + + +def test_frame_describe_unstacked_format(): + # GH 4792 + prices = { + Timestamp("2011-01-06 10:59:05", tz=None): 24990, + Timestamp("2011-01-06 12:43:33", tz=None): 25499, + Timestamp("2011-01-06 12:54:09", tz=None): 25499, + } + volumes = { + Timestamp("2011-01-06 10:59:05", tz=None): 1500000000, + Timestamp("2011-01-06 12:43:33", tz=None): 5000000000, + Timestamp("2011-01-06 12:54:09", tz=None): 100000000, + } + df = DataFrame({"PRICE": prices, "VOLUME": volumes}) + result = df.groupby("PRICE").VOLUME.describe() + data = [ + df[df.PRICE == 24990].VOLUME.describe().values.tolist(), + df[df.PRICE == 25499].VOLUME.describe().values.tolist(), + ] + expected = DataFrame( + data, + index=Index([24990, 25499], name="PRICE"), + columns=["count", "mean", "std", "min", "25%", "50%", "75%", "max"], + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.filterwarnings( + "ignore:" + "indexing past lexsort depth may impact performance:" + "pandas.errors.PerformanceWarning" +) +@pytest.mark.parametrize("as_index", [True, False]) +@pytest.mark.parametrize("keys", [["a1"], ["a1", "a2"]]) +def test_describe_with_duplicate_output_column_names(as_index, keys): + # GH 35314 + df = DataFrame( + { + "a1": [99, 99, 99, 88, 88, 88], + "a2": [99, 99, 99, 88, 88, 88], + "b": [1, 2, 3, 4, 5, 6], + "c": [10, 20, 30, 40, 50, 60], + }, + columns=["a1", "a2", "b", "b"], + copy=False, + ) + if keys == ["a1"]: + df = df.drop(columns="a2") + + expected = ( + DataFrame.from_records( + [ + ("b", "count", 3.0, 3.0), + ("b", "mean", 5.0, 2.0), + ("b", "std", 1.0, 1.0), + ("b", "min", 4.0, 1.0), + ("b", "25%", 4.5, 1.5), + ("b", "50%", 5.0, 2.0), + ("b", "75%", 5.5, 2.5), + ("b", "max", 6.0, 3.0), + ("b", "count", 3.0, 3.0), + ("b", "mean", 5.0, 2.0), + ("b", "std", 1.0, 1.0), + ("b", "min", 4.0, 1.0), + ("b", "25%", 4.5, 1.5), + ("b", "50%", 5.0, 2.0), + ("b", "75%", 5.5, 2.5), + ("b", "max", 6.0, 3.0), + ], + ) + .set_index([0, 1]) + .T + ) + expected.columns.names = [None, None] + if len(keys) == 2: + expected.index = MultiIndex( + levels=[[88, 99], [88, 99]], codes=[[0, 1], [0, 1]], names=["a1", "a2"] + ) + else: + expected.index = Index([88, 99], name="a1") + + if not as_index: + expected = expected.reset_index() + + result = df.groupby(keys, as_index=as_index).describe() + + tm.assert_frame_equal(result, expected) + + +def test_describe_duplicate_columns(): + # GH#50806 + df = DataFrame([[0, 1, 2, 3]]) + df.columns = [0, 1, 2, 0] + gb = df.groupby(df[1]) + result = gb.describe(percentiles=[]) + + columns = ["count", "mean", "std", "min", "50%", "max"] + frames = [ + DataFrame([[1.0, val, np.nan, val, val, val]], index=[1], columns=columns) + for val in (0.0, 2.0, 3.0) + ] + expected = pd.concat(frames, axis=1) + expected.columns = MultiIndex( + levels=[[0, 2], columns], + codes=[6 * [0] + 6 * [1] + 6 * [0], 3 * list(range(6))], + ) + expected.index.names = [1] + tm.assert_frame_equal(result, expected) + + +class TestGroupByNonCythonPaths: + # GH#5610 non-cython calls should not include the grouper + # Tests for code not expected to go through cython paths. + + @pytest.fixture + def df(self): + df = DataFrame( + [[1, 2, "foo"], [1, np.nan, "bar"], [3, np.nan, "baz"]], + columns=["A", "B", "C"], + ) + return df + + @pytest.fixture + def gb(self, df): + gb = df.groupby("A") + return gb + + @pytest.fixture + def gni(self, df): + gni = df.groupby("A", as_index=False) + return gni + + def test_describe(self, df, gb, gni): + # describe + expected_index = Index([1, 3], name="A") + expected_col = MultiIndex( + levels=[["B"], ["count", "mean", "std", "min", "25%", "50%", "75%", "max"]], + codes=[[0] * 8, list(range(8))], + ) + expected = DataFrame( + [ + [1.0, 2.0, np.nan, 2.0, 2.0, 2.0, 2.0, 2.0], + [0.0, np.nan, np.nan, np.nan, np.nan, np.nan, np.nan, np.nan], + ], + index=expected_index, + columns=expected_col, + ) + result = gb.describe() + tm.assert_frame_equal(result, expected) + + expected = expected.reset_index() + result = gni.describe() + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("dtype", [int, float, object]) +@pytest.mark.parametrize( + "kwargs", + [ + {"percentiles": [0.10, 0.20, 0.30], "include": "all", "exclude": None}, + {"percentiles": [0.10, 0.20, 0.30], "include": None, "exclude": ["int"]}, + {"percentiles": [0.10, 0.20, 0.30], "include": ["int"], "exclude": None}, + ], +) +def test_groupby_empty_dataset(dtype, kwargs): + # GH#41575 + df = DataFrame([[1, 2, 3]], columns=["A", "B", "C"], dtype=dtype) + df["B"] = df["B"].astype(int) + df["C"] = df["C"].astype(float) + + result = df.iloc[:0].groupby("A").describe(**kwargs) + expected = df.groupby("A").describe(**kwargs).reset_index(drop=True).iloc[:0] + tm.assert_frame_equal(result, expected) + + result = df.iloc[:0].groupby("A").B.describe(**kwargs) + expected = df.groupby("A").B.describe(**kwargs).reset_index(drop=True).iloc[:0] + expected.index = Index([], dtype=df.columns.dtype) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_groupby_shift_diff.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_groupby_shift_diff.py new file mode 100644 index 0000000000000000000000000000000000000000..94e672d4892feb513f75d9a3d3376e261e2c0f36 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_groupby_shift_diff.py @@ -0,0 +1,255 @@ +import numpy as np +import pytest + +from pandas import ( + DataFrame, + NaT, + Series, + Timedelta, + Timestamp, + date_range, +) +import pandas._testing as tm + + +def test_group_shift_with_null_key(): + # This test is designed to replicate the segfault in issue #13813. + n_rows = 1200 + + # Generate a moderately large dataframe with occasional missing + # values in column `B`, and then group by [`A`, `B`]. This should + # force `-1` in `labels` array of `g._grouper.group_info` exactly + # at those places, where the group-by key is partially missing. + df = DataFrame( + [(i % 12, i % 3 if i % 3 else np.nan, i) for i in range(n_rows)], + dtype=float, + columns=["A", "B", "Z"], + index=None, + ) + g = df.groupby(["A", "B"]) + + expected = DataFrame( + [(i + 12 if i % 3 and i < n_rows - 12 else np.nan) for i in range(n_rows)], + dtype=float, + columns=["Z"], + index=None, + ) + result = g.shift(-1) + + tm.assert_frame_equal(result, expected) + + +def test_group_shift_with_fill_value(): + # GH #24128 + n_rows = 24 + df = DataFrame( + [(i % 12, i % 3, i) for i in range(n_rows)], + dtype=float, + columns=["A", "B", "Z"], + index=None, + ) + g = df.groupby(["A", "B"]) + + expected = DataFrame( + [(i + 12 if i < n_rows - 12 else 0) for i in range(n_rows)], + dtype=float, + columns=["Z"], + index=None, + ) + result = g.shift(-1, fill_value=0) + + tm.assert_frame_equal(result, expected) + + +def test_group_shift_lose_timezone(): + # GH 30134 + now_dt = Timestamp.utcnow().as_unit("ns") + df = DataFrame({"a": [1, 1], "date": now_dt}) + result = df.groupby("a").shift(0).iloc[0] + expected = Series({"date": now_dt}, name=result.name) + tm.assert_series_equal(result, expected) + + +def test_group_diff_real_series(any_real_numpy_dtype): + df = DataFrame( + {"a": [1, 2, 3, 3, 2], "b": [1, 2, 3, 4, 5]}, + dtype=any_real_numpy_dtype, + ) + result = df.groupby("a")["b"].diff() + exp_dtype = "float" + if any_real_numpy_dtype in ["int8", "int16", "float32"]: + exp_dtype = "float32" + expected = Series([np.nan, np.nan, np.nan, 1.0, 3.0], dtype=exp_dtype, name="b") + tm.assert_series_equal(result, expected) + + +def test_group_diff_real_frame(any_real_numpy_dtype): + df = DataFrame( + { + "a": [1, 2, 3, 3, 2], + "b": [1, 2, 3, 4, 5], + "c": [1, 2, 3, 4, 6], + }, + dtype=any_real_numpy_dtype, + ) + result = df.groupby("a").diff() + exp_dtype = "float" + if any_real_numpy_dtype in ["int8", "int16", "float32"]: + exp_dtype = "float32" + expected = DataFrame( + { + "b": [np.nan, np.nan, np.nan, 1.0, 3.0], + "c": [np.nan, np.nan, np.nan, 1.0, 4.0], + }, + dtype=exp_dtype, + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "data", + [ + [ + Timestamp("2013-01-01"), + Timestamp("2013-01-02"), + Timestamp("2013-01-03"), + ], + [Timedelta("5 days"), Timedelta("6 days"), Timedelta("7 days")], + ], +) +def test_group_diff_datetimelike(data, unit): + df = DataFrame({"a": [1, 2, 2], "b": data}) + df["b"] = df["b"].dt.as_unit(unit) + result = df.groupby("a")["b"].diff() + expected = Series([NaT, NaT, Timedelta("1 days")], name="b").dt.as_unit(unit) + tm.assert_series_equal(result, expected) + + +def test_group_diff_bool(): + df = DataFrame({"a": [1, 2, 3, 3, 2], "b": [True, True, False, False, True]}) + result = df.groupby("a")["b"].diff() + expected = Series([np.nan, np.nan, np.nan, False, False], name="b") + tm.assert_series_equal(result, expected) + + +def test_group_diff_object_raises(object_dtype): + df = DataFrame( + {"a": ["foo", "bar", "bar"], "b": ["baz", "foo", "foo"]}, dtype=object_dtype + ) + with pytest.raises(TypeError, match=r"unsupported operand type\(s\) for -"): + df.groupby("a")["b"].diff() + + +def test_empty_shift_with_fill(): + # GH 41264, single-index check + df = DataFrame(columns=["a", "b", "c"]) + shifted = df.groupby(["a"]).shift(1) + shifted_with_fill = df.groupby(["a"]).shift(1, fill_value=0) + tm.assert_frame_equal(shifted, shifted_with_fill) + tm.assert_index_equal(shifted.index, shifted_with_fill.index) + + +def test_multindex_empty_shift_with_fill(): + # GH 41264, multi-index check + df = DataFrame(columns=["a", "b", "c"]) + shifted = df.groupby(["a", "b"]).shift(1) + shifted_with_fill = df.groupby(["a", "b"]).shift(1, fill_value=0) + tm.assert_frame_equal(shifted, shifted_with_fill) + tm.assert_index_equal(shifted.index, shifted_with_fill.index) + + +def test_shift_periods_freq(): + # GH 54093 + data = {"a": [1, 2, 3, 4, 5, 6], "b": [0, 0, 0, 1, 1, 1]} + df = DataFrame(data, index=date_range(start="20100101", periods=6)) + result = df.groupby(df.index).shift(periods=-2, freq="D") + expected = DataFrame(data, index=date_range(start="2009-12-30", periods=6)) + tm.assert_frame_equal(result, expected) + + +def test_shift_deprecate_freq_and_fill_value(): + # GH 53832 + data = {"a": [1, 2, 3, 4, 5, 6], "b": [0, 0, 0, 1, 1, 1]} + df = DataFrame(data, index=date_range(start="20100101", periods=6)) + msg = ( + "Passing a 'freq' together with a 'fill_value' silently ignores the fill_value" + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + df.groupby(df.index).shift(periods=-2, freq="D", fill_value="1") + + +def test_shift_disallow_suffix_if_periods_is_int(): + # GH#44424 + data = {"a": [1, 2, 3, 4, 5, 6], "b": [0, 0, 0, 1, 1, 1]} + df = DataFrame(data) + msg = "Cannot specify `suffix` if `periods` is an int." + with pytest.raises(ValueError, match=msg): + df.groupby("b").shift(1, suffix="fails") + + +def test_group_shift_with_multiple_periods(): + # GH#44424 + df = DataFrame({"a": [1, 2, 3, 3, 2], "b": [True, True, False, False, True]}) + + shifted_df = df.groupby("b")[["a"]].shift([0, 1]) + expected_df = DataFrame( + {"a_0": [1, 2, 3, 3, 2], "a_1": [np.nan, 1.0, np.nan, 3.0, 2.0]} + ) + tm.assert_frame_equal(shifted_df, expected_df) + + # series + shifted_series = df.groupby("b")["a"].shift([0, 1]) + tm.assert_frame_equal(shifted_series, expected_df) + + +def test_group_shift_with_multiple_periods_and_freq(): + # GH#44424 + df = DataFrame( + {"a": [1, 2, 3, 4, 5], "b": [True, True, False, False, True]}, + index=date_range("1/1/2000", periods=5, freq="h"), + ) + shifted_df = df.groupby("b")[["a"]].shift( + [0, 1], + freq="h", + ) + expected_df = DataFrame( + { + "a_0": [1.0, 2.0, 3.0, 4.0, 5.0, np.nan], + "a_1": [ + np.nan, + 1.0, + 2.0, + 3.0, + 4.0, + 5.0, + ], + }, + index=date_range("1/1/2000", periods=6, freq="h"), + ) + tm.assert_frame_equal(shifted_df, expected_df) + + +def test_group_shift_with_multiple_periods_and_fill_value(): + # GH#44424 + df = DataFrame( + {"a": [1, 2, 3, 4, 5], "b": [True, True, False, False, True]}, + ) + shifted_df = df.groupby("b")[["a"]].shift([0, 1], fill_value=-1) + expected_df = DataFrame( + {"a_0": [1, 2, 3, 4, 5], "a_1": [-1, 1, -1, 3, 2]}, + ) + tm.assert_frame_equal(shifted_df, expected_df) + + +def test_group_shift_with_multiple_periods_and_both_fill_and_freq_deprecated(): + # GH#44424 + df = DataFrame( + {"a": [1, 2, 3, 4, 5], "b": [True, True, False, False, True]}, + index=date_range("1/1/2000", periods=5, freq="h"), + ) + msg = ( + "Passing a 'freq' together with a 'fill_value' silently ignores the " + "fill_value" + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + df.groupby("b")[["a"]].shift([1, 2], fill_value=1, freq="h") diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_is_monotonic.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_is_monotonic.py new file mode 100644 index 0000000000000000000000000000000000000000..3428fc90f6e51a0bde0aba9c8ea08ebf414e5556 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_is_monotonic.py @@ -0,0 +1,78 @@ +import numpy as np +import pytest + +from pandas import ( + DataFrame, + Index, + Series, +) +import pandas._testing as tm + + +@pytest.mark.parametrize( + "in_vals, out_vals", + [ + # Basics: strictly increasing (T), strictly decreasing (F), + # abs val increasing (F), non-strictly increasing (T) + ([1, 2, 5, 3, 2, 0, 4, 5, -6, 1, 1], [True, False, False, True]), + # Test with inf vals + ( + [1, 2.1, np.inf, 3, 2, np.inf, -np.inf, 5, 11, 1, -np.inf], + [True, False, True, False], + ), + # Test with nan vals; should always be False + ( + [1, 2, np.nan, 3, 2, np.nan, np.nan, 5, -np.inf, 1, np.nan], + [False, False, False, False], + ), + ], +) +def test_is_monotonic_increasing(in_vals, out_vals): + # GH 17015 + source_dict = { + "A": ["1", "2", "3", "4", "5", "6", "7", "8", "9", "10", "11"], + "B": ["a", "a", "a", "b", "b", "b", "c", "c", "c", "d", "d"], + "C": in_vals, + } + df = DataFrame(source_dict) + result = df.groupby("B").C.is_monotonic_increasing + index = Index(list("abcd"), name="B") + expected = Series(index=index, data=out_vals, name="C") + tm.assert_series_equal(result, expected) + + # Also check result equal to manually taking x.is_monotonic_increasing. + expected = df.groupby(["B"]).C.apply(lambda x: x.is_monotonic_increasing) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "in_vals, out_vals", + [ + # Basics: strictly decreasing (T), strictly increasing (F), + # abs val decreasing (F), non-strictly increasing (T) + ([10, 9, 7, 3, 4, 5, -3, 2, 0, 1, 1], [True, False, False, True]), + # Test with inf vals + ( + [np.inf, 1, -np.inf, np.inf, 2, -3, -np.inf, 5, -3, -np.inf, -np.inf], + [True, True, False, True], + ), + # Test with nan vals; should always be False + ( + [1, 2, np.nan, 3, 2, np.nan, np.nan, 5, -np.inf, 1, np.nan], + [False, False, False, False], + ), + ], +) +def test_is_monotonic_decreasing(in_vals, out_vals): + # GH 17015 + source_dict = { + "A": ["1", "2", "3", "4", "5", "6", "7", "8", "9", "10", "11"], + "B": ["a", "a", "a", "b", "b", "b", "c", "c", "c", "d", "d"], + "C": in_vals, + } + + df = DataFrame(source_dict) + result = df.groupby("B").C.is_monotonic_decreasing + index = Index(list("abcd"), name="B") + expected = Series(index=index, data=out_vals, name="C") + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_nlargest_nsmallest.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_nlargest_nsmallest.py new file mode 100644 index 0000000000000000000000000000000000000000..bf983f04a3f3f17566299bafe756e95e2727f6ad --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_nlargest_nsmallest.py @@ -0,0 +1,115 @@ +import numpy as np +import pytest + +from pandas import ( + MultiIndex, + Series, + date_range, +) +import pandas._testing as tm + + +def test_nlargest(): + a = Series([1, 3, 5, 7, 2, 9, 0, 4, 6, 10]) + b = Series(list("a" * 5 + "b" * 5)) + gb = a.groupby(b) + r = gb.nlargest(3) + e = Series( + [7, 5, 3, 10, 9, 6], + index=MultiIndex.from_arrays([list("aaabbb"), [3, 2, 1, 9, 5, 8]]), + ) + tm.assert_series_equal(r, e) + + a = Series([1, 1, 3, 2, 0, 3, 3, 2, 1, 0]) + gb = a.groupby(b) + e = Series( + [3, 2, 1, 3, 3, 2], + index=MultiIndex.from_arrays([list("aaabbb"), [2, 3, 1, 6, 5, 7]]), + ) + tm.assert_series_equal(gb.nlargest(3, keep="last"), e) + + +def test_nlargest_mi_grouper(): + # see gh-21411 + npr = np.random.default_rng(2) + + dts = date_range("20180101", periods=10) + iterables = [dts, ["one", "two"]] + + idx = MultiIndex.from_product(iterables, names=["first", "second"]) + s = Series(npr.standard_normal(20), index=idx) + + result = s.groupby("first").nlargest(1) + + exp_idx = MultiIndex.from_tuples( + [ + (dts[0], dts[0], "one"), + (dts[1], dts[1], "one"), + (dts[2], dts[2], "one"), + (dts[3], dts[3], "two"), + (dts[4], dts[4], "one"), + (dts[5], dts[5], "one"), + (dts[6], dts[6], "one"), + (dts[7], dts[7], "one"), + (dts[8], dts[8], "one"), + (dts[9], dts[9], "one"), + ], + names=["first", "first", "second"], + ) + + exp_values = [ + 0.18905338179353307, + -0.41306354339189344, + 1.799707382720902, + 0.7738065867276614, + 0.28121066979764925, + 0.9775674511260357, + -0.3288239040579627, + 0.45495807124085547, + 0.5452887139646817, + 0.12682784711186987, + ] + + expected = Series(exp_values, index=exp_idx) + tm.assert_series_equal(result, expected, check_exact=False, rtol=1e-3) + + +def test_nsmallest(): + a = Series([1, 3, 5, 7, 2, 9, 0, 4, 6, 10]) + b = Series(list("a" * 5 + "b" * 5)) + gb = a.groupby(b) + r = gb.nsmallest(3) + e = Series( + [1, 2, 3, 0, 4, 6], + index=MultiIndex.from_arrays([list("aaabbb"), [0, 4, 1, 6, 7, 8]]), + ) + tm.assert_series_equal(r, e) + + a = Series([1, 1, 3, 2, 0, 3, 3, 2, 1, 0]) + gb = a.groupby(b) + e = Series( + [0, 1, 1, 0, 1, 2], + index=MultiIndex.from_arrays([list("aaabbb"), [4, 1, 0, 9, 8, 7]]), + ) + tm.assert_series_equal(gb.nsmallest(3, keep="last"), e) + + +@pytest.mark.parametrize( + "data, groups", + [([0, 1, 2, 3], [0, 0, 1, 1]), ([0], [0])], +) +@pytest.mark.parametrize("dtype", [None, *tm.ALL_INT_NUMPY_DTYPES]) +@pytest.mark.parametrize("method", ["nlargest", "nsmallest"]) +def test_nlargest_and_smallest_noop(data, groups, dtype, method): + # GH 15272, GH 16345, GH 29129 + # Test nlargest/smallest when it results in a noop, + # i.e. input is sorted and group size <= n + if dtype is not None: + data = np.array(data, dtype=dtype) + if method == "nlargest": + data = list(reversed(data)) + ser = Series(data, name="a") + result = getattr(ser.groupby(groups), method)(n=2) + expidx = np.array(groups, dtype=int) if isinstance(groups, list) else groups + expected = Series(data, index=MultiIndex.from_arrays([expidx, ser.index]), name="a") + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_nth.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_nth.py new file mode 100644 index 0000000000000000000000000000000000000000..2722993ee5cdff62c59d159e4a2b5a370afa868e --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_nth.py @@ -0,0 +1,922 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + DataFrame, + Index, + MultiIndex, + Series, + Timestamp, + isna, +) +import pandas._testing as tm + + +def test_first_last_nth(df): + # tests for first / last / nth + grouped = df.groupby("A") + first = grouped.first() + expected = df.loc[[1, 0], ["B", "C", "D"]] + expected.index = Index(["bar", "foo"], name="A") + expected = expected.sort_index() + tm.assert_frame_equal(first, expected) + + nth = grouped.nth(0) + expected = df.loc[[0, 1]] + tm.assert_frame_equal(nth, expected) + + last = grouped.last() + expected = df.loc[[5, 7], ["B", "C", "D"]] + expected.index = Index(["bar", "foo"], name="A") + tm.assert_frame_equal(last, expected) + + nth = grouped.nth(-1) + expected = df.iloc[[5, 7]] + tm.assert_frame_equal(nth, expected) + + nth = grouped.nth(1) + expected = df.iloc[[2, 3]] + tm.assert_frame_equal(nth, expected) + + # it works! + grouped["B"].first() + grouped["B"].last() + grouped["B"].nth(0) + + df = df.copy() + df.loc[df["A"] == "foo", "B"] = np.nan + grouped = df.groupby("A") + assert isna(grouped["B"].first()["foo"]) + assert isna(grouped["B"].last()["foo"]) + assert isna(grouped["B"].nth(0).iloc[0]) + + # v0.14.0 whatsnew + df = DataFrame([[1, np.nan], [1, 4], [5, 6]], columns=["A", "B"]) + g = df.groupby("A") + result = g.first() + expected = df.iloc[[1, 2]].set_index("A") + tm.assert_frame_equal(result, expected) + + expected = df.iloc[[1, 2]] + result = g.nth(0, dropna="any") + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("method", ["first", "last"]) +def test_first_last_with_na_object(method, nulls_fixture): + # https://github.com/pandas-dev/pandas/issues/32123 + groups = DataFrame({"a": [1, 1, 2, 2], "b": [1, 2, 3, nulls_fixture]}).groupby("a") + result = getattr(groups, method)() + + if method == "first": + values = [1, 3] + else: + values = [2, 3] + + values = np.array(values, dtype=result["b"].dtype) + idx = Index([1, 2], name="a") + expected = DataFrame({"b": values}, index=idx) + + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("index", [0, -1]) +def test_nth_with_na_object(index, nulls_fixture): + # https://github.com/pandas-dev/pandas/issues/32123 + df = DataFrame({"a": [1, 1, 2, 2], "b": [1, 2, 3, nulls_fixture]}) + groups = df.groupby("a") + result = groups.nth(index) + expected = df.iloc[[0, 2]] if index == 0 else df.iloc[[1, 3]] + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("method", ["first", "last"]) +def test_first_last_with_None(method): + # https://github.com/pandas-dev/pandas/issues/32800 + # None should be preserved as object dtype + df = DataFrame.from_dict({"id": ["a"], "value": [None]}) + groups = df.groupby("id", as_index=False) + result = getattr(groups, method)() + + tm.assert_frame_equal(result, df) + + +@pytest.mark.parametrize("method", ["first", "last"]) +@pytest.mark.parametrize( + "df, expected", + [ + ( + DataFrame({"id": "a", "value": [None, "foo", np.nan]}), + DataFrame({"value": ["foo"]}, index=Index(["a"], name="id")), + ), + ( + DataFrame({"id": "a", "value": [np.nan]}, dtype=object), + DataFrame({"value": [None]}, index=Index(["a"], name="id")), + ), + ], +) +def test_first_last_with_None_expanded(method, df, expected): + # GH 32800, 38286 + result = getattr(df.groupby("id"), method)() + tm.assert_frame_equal(result, expected) + + +def test_first_last_nth_dtypes(): + df = DataFrame( + { + "A": ["foo", "bar", "foo", "bar", "foo", "bar", "foo", "foo"], + "B": ["one", "one", "two", "three", "two", "two", "one", "three"], + "C": np.random.default_rng(2).standard_normal(8), + "D": np.array(np.random.default_rng(2).standard_normal(8), dtype="float32"), + } + ) + df["E"] = True + df["F"] = 1 + + # tests for first / last / nth + grouped = df.groupby("A") + first = grouped.first() + expected = df.loc[[1, 0], ["B", "C", "D", "E", "F"]] + expected.index = Index(["bar", "foo"], name="A") + expected = expected.sort_index() + tm.assert_frame_equal(first, expected) + + last = grouped.last() + expected = df.loc[[5, 7], ["B", "C", "D", "E", "F"]] + expected.index = Index(["bar", "foo"], name="A") + expected = expected.sort_index() + tm.assert_frame_equal(last, expected) + + nth = grouped.nth(1) + expected = df.iloc[[2, 3]] + tm.assert_frame_equal(nth, expected) + + +def test_first_last_nth_dtypes2(): + # GH 2763, first/last shifting dtypes + idx = list(range(10)) + idx.append(9) + ser = Series(data=range(11), index=idx, name="IntCol") + assert ser.dtype == "int64" + f = ser.groupby(level=0).first() + assert f.dtype == "int64" + + +def test_first_last_nth_nan_dtype(): + # GH 33591 + df = DataFrame({"data": ["A"], "nans": Series([None], dtype=object)}) + grouped = df.groupby("data") + + expected = df.set_index("data").nans + tm.assert_series_equal(grouped.nans.first(), expected) + tm.assert_series_equal(grouped.nans.last(), expected) + + expected = df.nans + tm.assert_series_equal(grouped.nans.nth(-1), expected) + tm.assert_series_equal(grouped.nans.nth(0), expected) + + +def test_first_strings_timestamps(): + # GH 11244 + test = DataFrame( + { + Timestamp("2012-01-01 00:00:00"): ["a", "b"], + Timestamp("2012-01-02 00:00:00"): ["c", "d"], + "name": ["e", "e"], + "aaaa": ["f", "g"], + } + ) + result = test.groupby("name").first() + expected = DataFrame( + [["a", "c", "f"]], + columns=Index([Timestamp("2012-01-01"), Timestamp("2012-01-02"), "aaaa"]), + index=Index(["e"], name="name"), + ) + tm.assert_frame_equal(result, expected) + + +def test_nth(): + df = DataFrame([[1, np.nan], [1, 4], [5, 6]], columns=["A", "B"]) + gb = df.groupby("A") + + tm.assert_frame_equal(gb.nth(0), df.iloc[[0, 2]]) + tm.assert_frame_equal(gb.nth(1), df.iloc[[1]]) + tm.assert_frame_equal(gb.nth(2), df.loc[[]]) + tm.assert_frame_equal(gb.nth(-1), df.iloc[[1, 2]]) + tm.assert_frame_equal(gb.nth(-2), df.iloc[[0]]) + tm.assert_frame_equal(gb.nth(-3), df.loc[[]]) + tm.assert_series_equal(gb.B.nth(0), df.B.iloc[[0, 2]]) + tm.assert_series_equal(gb.B.nth(1), df.B.iloc[[1]]) + tm.assert_frame_equal(gb[["B"]].nth(0), df[["B"]].iloc[[0, 2]]) + + tm.assert_frame_equal(gb.nth(0, dropna="any"), df.iloc[[1, 2]]) + tm.assert_frame_equal(gb.nth(-1, dropna="any"), df.iloc[[1, 2]]) + + tm.assert_frame_equal(gb.nth(7, dropna="any"), df.iloc[:0]) + tm.assert_frame_equal(gb.nth(2, dropna="any"), df.iloc[:0]) + + +def test_nth2(): + # out of bounds, regression from 0.13.1 + # GH 6621 + df = DataFrame( + { + "color": {0: "green", 1: "green", 2: "red", 3: "red", 4: "red"}, + "food": {0: "ham", 1: "eggs", 2: "eggs", 3: "ham", 4: "pork"}, + "two": { + 0: 1.5456590000000001, + 1: -0.070345000000000005, + 2: -2.4004539999999999, + 3: 0.46206000000000003, + 4: 0.52350799999999997, + }, + "one": { + 0: 0.56573799999999996, + 1: -0.9742360000000001, + 2: 1.033801, + 3: -0.78543499999999999, + 4: 0.70422799999999997, + }, + } + ).set_index(["color", "food"]) + + result = df.groupby(level=0, as_index=False).nth(2) + expected = df.iloc[[-1]] + tm.assert_frame_equal(result, expected) + + result = df.groupby(level=0, as_index=False).nth(3) + expected = df.loc[[]] + tm.assert_frame_equal(result, expected) + + +def test_nth3(): + # GH 7559 + # from the vbench + df = DataFrame(np.random.default_rng(2).integers(1, 10, (100, 2)), dtype="int64") + ser = df[1] + gb = df[0] + expected = ser.groupby(gb).first() + expected2 = ser.groupby(gb).apply(lambda x: x.iloc[0]) + tm.assert_series_equal(expected2, expected, check_names=False) + assert expected.name == 1 + assert expected2.name == 1 + + # validate first + v = ser[gb == 1].iloc[0] + assert expected.iloc[0] == v + assert expected2.iloc[0] == v + + with pytest.raises(ValueError, match="For a DataFrame"): + ser.groupby(gb, sort=False).nth(0, dropna=True) + + +def test_nth4(): + # doc example + df = DataFrame([[1, np.nan], [1, 4], [5, 6]], columns=["A", "B"]) + gb = df.groupby("A") + result = gb.B.nth(0, dropna="all") + expected = df.B.iloc[[1, 2]] + tm.assert_series_equal(result, expected) + + +def test_nth5(): + # test multiple nth values + df = DataFrame([[1, np.nan], [1, 3], [1, 4], [5, 6], [5, 7]], columns=["A", "B"]) + gb = df.groupby("A") + + tm.assert_frame_equal(gb.nth(0), df.iloc[[0, 3]]) + tm.assert_frame_equal(gb.nth([0]), df.iloc[[0, 3]]) + tm.assert_frame_equal(gb.nth([0, 1]), df.iloc[[0, 1, 3, 4]]) + tm.assert_frame_equal(gb.nth([0, -1]), df.iloc[[0, 2, 3, 4]]) + tm.assert_frame_equal(gb.nth([0, 1, 2]), df.iloc[[0, 1, 2, 3, 4]]) + tm.assert_frame_equal(gb.nth([0, 1, -1]), df.iloc[[0, 1, 2, 3, 4]]) + tm.assert_frame_equal(gb.nth([2]), df.iloc[[2]]) + tm.assert_frame_equal(gb.nth([3, 4]), df.loc[[]]) + + +def test_nth_bdays(unit): + business_dates = pd.date_range( + start="4/1/2014", end="6/30/2014", freq="B", unit=unit + ) + df = DataFrame(1, index=business_dates, columns=["a", "b"]) + # get the first, fourth and last two business days for each month + key = [df.index.year, df.index.month] + result = df.groupby(key, as_index=False).nth([0, 3, -2, -1]) + expected_dates = pd.to_datetime( + [ + "2014/4/1", + "2014/4/4", + "2014/4/29", + "2014/4/30", + "2014/5/1", + "2014/5/6", + "2014/5/29", + "2014/5/30", + "2014/6/2", + "2014/6/5", + "2014/6/27", + "2014/6/30", + ] + ).as_unit(unit) + expected = DataFrame(1, columns=["a", "b"], index=expected_dates) + tm.assert_frame_equal(result, expected) + + +def test_nth_multi_grouper(three_group): + # PR 9090, related to issue 8979 + # test nth on multiple groupers + grouped = three_group.groupby(["A", "B"]) + result = grouped.nth(0) + expected = three_group.iloc[[0, 3, 4, 7]] + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "data, expected_first, expected_last", + [ + ( + { + "id": ["A"], + "time": Timestamp("2012-02-01 14:00:00", tz="US/Central"), + "foo": [1], + }, + { + "id": ["A"], + "time": Timestamp("2012-02-01 14:00:00", tz="US/Central"), + "foo": [1], + }, + { + "id": ["A"], + "time": Timestamp("2012-02-01 14:00:00", tz="US/Central"), + "foo": [1], + }, + ), + ( + { + "id": ["A", "B", "A"], + "time": [ + Timestamp("2012-01-01 13:00:00", tz="America/New_York"), + Timestamp("2012-02-01 14:00:00", tz="US/Central"), + Timestamp("2012-03-01 12:00:00", tz="Europe/London"), + ], + "foo": [1, 2, 3], + }, + { + "id": ["A", "B"], + "time": [ + Timestamp("2012-01-01 13:00:00", tz="America/New_York"), + Timestamp("2012-02-01 14:00:00", tz="US/Central"), + ], + "foo": [1, 2], + }, + { + "id": ["A", "B"], + "time": [ + Timestamp("2012-03-01 12:00:00", tz="Europe/London"), + Timestamp("2012-02-01 14:00:00", tz="US/Central"), + ], + "foo": [3, 2], + }, + ), + ], +) +def test_first_last_tz(data, expected_first, expected_last): + # GH15884 + # Test that the timezone is retained when calling first + # or last on groupby with as_index=False + + df = DataFrame(data) + + result = df.groupby("id", as_index=False).first() + expected = DataFrame(expected_first) + cols = ["id", "time", "foo"] + tm.assert_frame_equal(result[cols], expected[cols]) + + result = df.groupby("id", as_index=False)["time"].first() + tm.assert_frame_equal(result, expected[["id", "time"]]) + + result = df.groupby("id", as_index=False).last() + expected = DataFrame(expected_last) + cols = ["id", "time", "foo"] + tm.assert_frame_equal(result[cols], expected[cols]) + + result = df.groupby("id", as_index=False)["time"].last() + tm.assert_frame_equal(result, expected[["id", "time"]]) + + +@pytest.mark.parametrize( + "method, ts, alpha", + [ + ["first", Timestamp("2013-01-01", tz="US/Eastern"), "a"], + ["last", Timestamp("2013-01-02", tz="US/Eastern"), "b"], + ], +) +def test_first_last_tz_multi_column(method, ts, alpha, unit): + # GH 21603 + category_string = Series(list("abc")).astype("category") + dti = pd.date_range("20130101", periods=3, tz="US/Eastern", unit=unit) + df = DataFrame( + { + "group": [1, 1, 2], + "category_string": category_string, + "datetimetz": dti, + } + ) + result = getattr(df.groupby("group"), method)() + expected = DataFrame( + { + "category_string": pd.Categorical( + [alpha, "c"], dtype=category_string.dtype + ), + "datetimetz": [ts, Timestamp("2013-01-03", tz="US/Eastern")], + }, + index=Index([1, 2], name="group"), + ) + expected["datetimetz"] = expected["datetimetz"].dt.as_unit(unit) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "values", + [ + pd.array([True, False], dtype="boolean"), + pd.array([1, 2], dtype="Int64"), + pd.to_datetime(["2020-01-01", "2020-02-01"]), + pd.to_timedelta([1, 2], unit="D"), + ], +) +@pytest.mark.parametrize("function", ["first", "last", "min", "max"]) +def test_first_last_extension_array_keeps_dtype(values, function): + # https://github.com/pandas-dev/pandas/issues/33071 + # https://github.com/pandas-dev/pandas/issues/32194 + df = DataFrame({"a": [1, 2], "b": values}) + grouped = df.groupby("a") + idx = Index([1, 2], name="a") + expected_series = Series(values, name="b", index=idx) + expected_frame = DataFrame({"b": values}, index=idx) + + result_series = getattr(grouped["b"], function)() + tm.assert_series_equal(result_series, expected_series) + + result_frame = grouped.agg({"b": function}) + tm.assert_frame_equal(result_frame, expected_frame) + + +def test_nth_multi_index_as_expected(): + # PR 9090, related to issue 8979 + # test nth on MultiIndex + three_group = DataFrame( + { + "A": [ + "foo", + "foo", + "foo", + "foo", + "bar", + "bar", + "bar", + "bar", + "foo", + "foo", + "foo", + ], + "B": [ + "one", + "one", + "one", + "two", + "one", + "one", + "one", + "two", + "two", + "two", + "one", + ], + "C": [ + "dull", + "dull", + "shiny", + "dull", + "dull", + "shiny", + "shiny", + "dull", + "shiny", + "shiny", + "shiny", + ], + } + ) + grouped = three_group.groupby(["A", "B"]) + result = grouped.nth(0) + expected = three_group.iloc[[0, 3, 4, 7]] + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "op, n, expected_rows", + [ + ("head", -1, [0]), + ("head", 0, []), + ("head", 1, [0, 2]), + ("head", 7, [0, 1, 2]), + ("tail", -1, [1]), + ("tail", 0, []), + ("tail", 1, [1, 2]), + ("tail", 7, [0, 1, 2]), + ], +) +@pytest.mark.parametrize("columns", [None, [], ["A"], ["B"], ["A", "B"]]) +@pytest.mark.parametrize("as_index", [True, False]) +def test_groupby_head_tail(op, n, expected_rows, columns, as_index): + df = DataFrame([[1, 2], [1, 4], [5, 6]], columns=["A", "B"]) + g = df.groupby("A", as_index=as_index) + expected = df.iloc[expected_rows] + if columns is not None: + g = g[columns] + expected = expected[columns] + result = getattr(g, op)(n) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "op, n, expected_cols", + [ + ("head", -1, [0]), + ("head", 0, []), + ("head", 1, [0, 2]), + ("head", 7, [0, 1, 2]), + ("tail", -1, [1]), + ("tail", 0, []), + ("tail", 1, [1, 2]), + ("tail", 7, [0, 1, 2]), + ], +) +def test_groupby_head_tail_axis_1(op, n, expected_cols): + # GH 9772 + df = DataFrame( + [[1, 2, 3], [1, 4, 5], [2, 6, 7], [3, 8, 9]], columns=["A", "B", "C"] + ) + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + g = df.groupby([0, 0, 1], axis=1) + expected = df.iloc[:, expected_cols] + result = getattr(g, op)(n) + tm.assert_frame_equal(result, expected) + + +def test_group_selection_cache(): + # GH 12839 nth, head, and tail should return same result consistently + df = DataFrame([[1, 2], [1, 4], [5, 6]], columns=["A", "B"]) + expected = df.iloc[[0, 2]] + + g = df.groupby("A") + result1 = g.head(n=2) + result2 = g.nth(0) + tm.assert_frame_equal(result1, df) + tm.assert_frame_equal(result2, expected) + + g = df.groupby("A") + result1 = g.tail(n=2) + result2 = g.nth(0) + tm.assert_frame_equal(result1, df) + tm.assert_frame_equal(result2, expected) + + g = df.groupby("A") + result1 = g.nth(0) + result2 = g.head(n=2) + tm.assert_frame_equal(result1, expected) + tm.assert_frame_equal(result2, df) + + g = df.groupby("A") + result1 = g.nth(0) + result2 = g.tail(n=2) + tm.assert_frame_equal(result1, expected) + tm.assert_frame_equal(result2, df) + + +def test_nth_empty(): + # GH 16064 + df = DataFrame(index=[0], columns=["a", "b", "c"]) + result = df.groupby("a").nth(10) + expected = df.iloc[:0] + tm.assert_frame_equal(result, expected) + + result = df.groupby(["a", "b"]).nth(10) + expected = df.iloc[:0] + tm.assert_frame_equal(result, expected) + + +def test_nth_column_order(): + # GH 20760 + # Check that nth preserves column order + df = DataFrame( + [[1, "b", 100], [1, "a", 50], [1, "a", np.nan], [2, "c", 200], [2, "d", 150]], + columns=["A", "C", "B"], + ) + result = df.groupby("A").nth(0) + expected = df.iloc[[0, 3]] + tm.assert_frame_equal(result, expected) + + result = df.groupby("A").nth(-1, dropna="any") + expected = df.iloc[[1, 4]] + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("dropna", [None, "any", "all"]) +def test_nth_nan_in_grouper(dropna): + # GH 26011 + df = DataFrame( + { + "a": [np.nan, "a", np.nan, "b", np.nan], + "b": [0, 2, 4, 6, 8], + "c": [1, 3, 5, 7, 9], + } + ) + result = df.groupby("a").nth(0, dropna=dropna) + expected = df.iloc[[1, 3]] + + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("dropna", [None, "any", "all"]) +def test_nth_nan_in_grouper_series(dropna): + # GH 26454 + df = DataFrame( + { + "a": [np.nan, "a", np.nan, "b", np.nan], + "b": [0, 2, 4, 6, 8], + } + ) + result = df.groupby("a")["b"].nth(0, dropna=dropna) + expected = df["b"].iloc[[1, 3]] + + tm.assert_series_equal(result, expected) + + +def test_first_categorical_and_datetime_data_nat(): + # GH 20520 + df = DataFrame( + { + "group": ["first", "first", "second", "third", "third"], + "time": 5 * [np.datetime64("NaT")], + "categories": Series(["a", "b", "c", "a", "b"], dtype="category"), + } + ) + result = df.groupby("group").first() + expected = DataFrame( + { + "time": 3 * [np.datetime64("NaT")], + "categories": Series(["a", "c", "a"]).astype( + pd.CategoricalDtype(["a", "b", "c"]) + ), + } + ) + expected.index = Index(["first", "second", "third"], name="group") + tm.assert_frame_equal(result, expected) + + +def test_first_multi_key_groupby_categorical(): + # GH 22512 + df = DataFrame( + { + "A": [1, 1, 1, 2, 2], + "B": [100, 100, 200, 100, 100], + "C": ["apple", "orange", "mango", "mango", "orange"], + "D": ["jupiter", "mercury", "mars", "venus", "venus"], + } + ) + df = df.astype({"D": "category"}) + result = df.groupby(by=["A", "B"]).first() + expected = DataFrame( + { + "C": ["apple", "mango", "mango"], + "D": Series(["jupiter", "mars", "venus"]).astype( + pd.CategoricalDtype(["jupiter", "mars", "mercury", "venus"]) + ), + } + ) + expected.index = MultiIndex.from_tuples( + [(1, 100), (1, 200), (2, 100)], names=["A", "B"] + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("method", ["first", "last", "nth"]) +def test_groupby_last_first_nth_with_none(method, nulls_fixture): + # GH29645 + expected = Series(["y"], dtype=object) + data = Series( + [nulls_fixture, nulls_fixture, nulls_fixture, "y", nulls_fixture], + index=[0, 0, 0, 0, 0], + dtype=object, + ).groupby(level=0) + + if method == "nth": + result = getattr(data, method)(3) + else: + result = getattr(data, method)() + + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "arg, expected_rows", + [ + [slice(None, 3, 2), [0, 1, 4, 5]], + [slice(None, -2), [0, 2, 5]], + [[slice(None, 2), slice(-2, None)], [0, 1, 2, 3, 4, 6, 7]], + [[0, 1, slice(-2, None)], [0, 1, 2, 3, 4, 6, 7]], + ], +) +def test_slice(slice_test_df, slice_test_grouped, arg, expected_rows): + # Test slices GH #42947 + + result = slice_test_grouped.nth[arg] + equivalent = slice_test_grouped.nth(arg) + expected = slice_test_df.iloc[expected_rows] + + tm.assert_frame_equal(result, expected) + tm.assert_frame_equal(equivalent, expected) + + +def test_nth_indexed(slice_test_df, slice_test_grouped): + # Test index notation GH #44688 + + result = slice_test_grouped.nth[0, 1, -2:] + equivalent = slice_test_grouped.nth([0, 1, slice(-2, None)]) + expected = slice_test_df.iloc[[0, 1, 2, 3, 4, 6, 7]] + + tm.assert_frame_equal(result, expected) + tm.assert_frame_equal(equivalent, expected) + + +def test_invalid_argument(slice_test_grouped): + # Test for error on invalid argument + + with pytest.raises(TypeError, match="Invalid index"): + slice_test_grouped.nth(3.14) + + +def test_negative_step(slice_test_grouped): + # Test for error on negative slice step + + with pytest.raises(ValueError, match="Invalid step"): + slice_test_grouped.nth(slice(None, None, -1)) + + +def test_np_ints(slice_test_df, slice_test_grouped): + # Test np ints work + + result = slice_test_grouped.nth(np.array([0, 1])) + expected = slice_test_df.iloc[[0, 1, 2, 3, 4]] + tm.assert_frame_equal(result, expected) + + +def test_groupby_nth_with_column_axis(): + # GH43926 + df = DataFrame( + [ + [4, 5, 6], + [8, 8, 7], + ], + index=["z", "y"], + columns=["C", "B", "A"], + ) + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + gb = df.groupby(df.iloc[1], axis=1) + result = gb.nth(0) + expected = df.iloc[:, [0, 2]] + tm.assert_frame_equal(result, expected) + + +def test_groupby_nth_interval(): + # GH#24205 + idx_result = MultiIndex( + [ + pd.CategoricalIndex([pd.Interval(0, 1), pd.Interval(1, 2)]), + pd.CategoricalIndex([pd.Interval(0, 10), pd.Interval(10, 20)]), + ], + [[0, 0, 0, 1, 1], [0, 1, 1, 0, -1]], + ) + df_result = DataFrame({"col": range(len(idx_result))}, index=idx_result) + result = df_result.groupby(level=[0, 1], observed=False).nth(0) + val_expected = [0, 1, 3] + idx_expected = MultiIndex( + [ + pd.CategoricalIndex([pd.Interval(0, 1), pd.Interval(1, 2)]), + pd.CategoricalIndex([pd.Interval(0, 10), pd.Interval(10, 20)]), + ], + [[0, 0, 1], [0, 1, 0]], + ) + expected = DataFrame(val_expected, index=idx_expected, columns=["col"]) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "start, stop, expected_values, expected_columns", + [ + (None, None, [0, 1, 2, 3, 4], list("ABCDE")), + (None, 1, [0, 3], list("AD")), + (None, 9, [0, 1, 2, 3, 4], list("ABCDE")), + (None, -1, [0, 1, 3], list("ABD")), + (1, None, [1, 2, 4], list("BCE")), + (1, -1, [1], list("B")), + (-1, None, [2, 4], list("CE")), + (-1, 2, [4], list("E")), + ], +) +@pytest.mark.parametrize("method", ["call", "index"]) +def test_nth_slices_with_column_axis( + start, stop, expected_values, expected_columns, method +): + df = DataFrame([range(5)], columns=[list("ABCDE")]) + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + gb = df.groupby([5, 5, 5, 6, 6], axis=1) + result = { + "call": lambda start, stop: gb.nth(slice(start, stop)), + "index": lambda start, stop: gb.nth[start:stop], + }[method](start, stop) + expected = DataFrame([expected_values], columns=[expected_columns]) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.filterwarnings( + "ignore:invalid value encountered in remainder:RuntimeWarning" +) +def test_head_tail_dropna_true(): + # GH#45089 + df = DataFrame( + [["a", "z"], ["b", np.nan], ["c", np.nan], ["c", np.nan]], columns=["X", "Y"] + ) + expected = DataFrame([["a", "z"]], columns=["X", "Y"]) + + result = df.groupby(["X", "Y"]).head(n=1) + tm.assert_frame_equal(result, expected) + + result = df.groupby(["X", "Y"]).tail(n=1) + tm.assert_frame_equal(result, expected) + + result = df.groupby(["X", "Y"]).nth(n=0) + tm.assert_frame_equal(result, expected) + + +def test_head_tail_dropna_false(): + # GH#45089 + df = DataFrame([["a", "z"], ["b", np.nan], ["c", np.nan]], columns=["X", "Y"]) + expected = DataFrame([["a", "z"], ["b", np.nan], ["c", np.nan]], columns=["X", "Y"]) + + result = df.groupby(["X", "Y"], dropna=False).head(n=1) + tm.assert_frame_equal(result, expected) + + result = df.groupby(["X", "Y"], dropna=False).tail(n=1) + tm.assert_frame_equal(result, expected) + + result = df.groupby(["X", "Y"], dropna=False).nth(n=0) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("selection", ("b", ["b"], ["b", "c"])) +@pytest.mark.parametrize("dropna", ["any", "all", None]) +def test_nth_after_selection(selection, dropna): + # GH#11038, GH#53518 + df = DataFrame( + { + "a": [1, 1, 2], + "b": [np.nan, 3, 4], + "c": [5, 6, 7], + } + ) + gb = df.groupby("a")[selection] + result = gb.nth(0, dropna=dropna) + if dropna == "any" or (dropna == "all" and selection != ["b", "c"]): + locs = [1, 2] + else: + locs = [0, 2] + expected = df.loc[locs, selection] + tm.assert_equal(result, expected) + + +@pytest.mark.parametrize( + "data", + [ + ( + Timestamp("2011-01-15 12:50:28.502376"), + Timestamp("2011-01-20 12:50:28.593448"), + ), + (24650000000000001, 24650000000000002), + ], +) +def test_groupby_nth_int_like_precision(data): + # GH#6620, GH#9311 + df = DataFrame({"a": [1, 1], "b": data}) + + grouped = df.groupby("a") + result = grouped.nth(0) + expected = DataFrame({"a": 1, "b": [data[0]]}) + + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_quantile.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_quantile.py new file mode 100644 index 0000000000000000000000000000000000000000..3943590b069ad9a8e32bfd36ee849bb036c7865f --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_quantile.py @@ -0,0 +1,496 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + DataFrame, + Index, +) +import pandas._testing as tm + + +@pytest.mark.parametrize( + "interpolation", ["linear", "lower", "higher", "nearest", "midpoint"] +) +@pytest.mark.parametrize( + "a_vals,b_vals", + [ + # Ints + ([1, 2, 3, 4, 5], [5, 4, 3, 2, 1]), + ([1, 2, 3, 4], [4, 3, 2, 1]), + ([1, 2, 3, 4, 5], [4, 3, 2, 1]), + # Floats + ([1.0, 2.0, 3.0, 4.0, 5.0], [5.0, 4.0, 3.0, 2.0, 1.0]), + # Missing data + ([1.0, np.nan, 3.0, np.nan, 5.0], [5.0, np.nan, 3.0, np.nan, 1.0]), + ([np.nan, 4.0, np.nan, 2.0, np.nan], [np.nan, 4.0, np.nan, 2.0, np.nan]), + # Timestamps + ( + pd.date_range("1/1/18", freq="D", periods=5), + pd.date_range("1/1/18", freq="D", periods=5)[::-1], + ), + ( + pd.date_range("1/1/18", freq="D", periods=5).as_unit("s"), + pd.date_range("1/1/18", freq="D", periods=5)[::-1].as_unit("s"), + ), + # All NA + ([np.nan] * 5, [np.nan] * 5), + ], +) +@pytest.mark.parametrize("q", [0, 0.25, 0.5, 0.75, 1]) +def test_quantile(interpolation, a_vals, b_vals, q, request): + if ( + interpolation == "nearest" + and q == 0.5 + and isinstance(b_vals, list) + and b_vals == [4, 3, 2, 1] + ): + request.applymarker( + pytest.mark.xfail( + reason="Unclear numpy expectation for nearest " + "result with equidistant data" + ) + ) + all_vals = pd.concat([pd.Series(a_vals), pd.Series(b_vals)]) + + a_expected = pd.Series(a_vals).quantile(q, interpolation=interpolation) + b_expected = pd.Series(b_vals).quantile(q, interpolation=interpolation) + + df = DataFrame({"key": ["a"] * len(a_vals) + ["b"] * len(b_vals), "val": all_vals}) + + expected = DataFrame( + [a_expected, b_expected], columns=["val"], index=Index(["a", "b"], name="key") + ) + if all_vals.dtype.kind == "M" and expected.dtypes.values[0].kind == "M": + # TODO(non-nano): this should be unnecessary once array_to_datetime + # correctly infers non-nano from Timestamp.unit + expected = expected.astype(all_vals.dtype) + result = df.groupby("key").quantile(q, interpolation=interpolation) + + tm.assert_frame_equal(result, expected) + + +def test_quantile_array(): + # https://github.com/pandas-dev/pandas/issues/27526 + df = DataFrame({"A": [0, 1, 2, 3, 4]}) + key = np.array([0, 0, 1, 1, 1], dtype=np.int64) + result = df.groupby(key).quantile([0.25]) + + index = pd.MultiIndex.from_product([[0, 1], [0.25]]) + expected = DataFrame({"A": [0.25, 2.50]}, index=index) + tm.assert_frame_equal(result, expected) + + df = DataFrame({"A": [0, 1, 2, 3], "B": [4, 5, 6, 7]}) + index = pd.MultiIndex.from_product([[0, 1], [0.25, 0.75]]) + + key = np.array([0, 0, 1, 1], dtype=np.int64) + result = df.groupby(key).quantile([0.25, 0.75]) + expected = DataFrame( + {"A": [0.25, 0.75, 2.25, 2.75], "B": [4.25, 4.75, 6.25, 6.75]}, index=index + ) + tm.assert_frame_equal(result, expected) + + +def test_quantile_array2(): + # https://github.com/pandas-dev/pandas/pull/28085#issuecomment-524066959 + arr = np.random.default_rng(2).integers(0, 5, size=(10, 3), dtype=np.int64) + df = DataFrame(arr, columns=list("ABC")) + result = df.groupby("A").quantile([0.3, 0.7]) + expected = DataFrame( + { + "B": [2.0, 2.0, 2.3, 2.7, 0.3, 0.7, 3.2, 4.0, 0.3, 0.7], + "C": [1.0, 1.0, 1.9, 3.0999999999999996, 0.3, 0.7, 2.6, 3.0, 1.2, 2.8], + }, + index=pd.MultiIndex.from_product( + [[0, 1, 2, 3, 4], [0.3, 0.7]], names=["A", None] + ), + ) + tm.assert_frame_equal(result, expected) + + +def test_quantile_array_no_sort(): + df = DataFrame({"A": [0, 1, 2], "B": [3, 4, 5]}) + key = np.array([1, 0, 1], dtype=np.int64) + result = df.groupby(key, sort=False).quantile([0.25, 0.5, 0.75]) + expected = DataFrame( + {"A": [0.5, 1.0, 1.5, 1.0, 1.0, 1.0], "B": [3.5, 4.0, 4.5, 4.0, 4.0, 4.0]}, + index=pd.MultiIndex.from_product([[1, 0], [0.25, 0.5, 0.75]]), + ) + tm.assert_frame_equal(result, expected) + + result = df.groupby(key, sort=False).quantile([0.75, 0.25]) + expected = DataFrame( + {"A": [1.5, 0.5, 1.0, 1.0], "B": [4.5, 3.5, 4.0, 4.0]}, + index=pd.MultiIndex.from_product([[1, 0], [0.75, 0.25]]), + ) + tm.assert_frame_equal(result, expected) + + +def test_quantile_array_multiple_levels(): + df = DataFrame( + {"A": [0, 1, 2], "B": [3, 4, 5], "c": ["a", "a", "a"], "d": ["a", "a", "b"]} + ) + result = df.groupby(["c", "d"]).quantile([0.25, 0.75]) + index = pd.MultiIndex.from_tuples( + [("a", "a", 0.25), ("a", "a", 0.75), ("a", "b", 0.25), ("a", "b", 0.75)], + names=["c", "d", None], + ) + expected = DataFrame( + {"A": [0.25, 0.75, 2.0, 2.0], "B": [3.25, 3.75, 5.0, 5.0]}, index=index + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("frame_size", [(2, 3), (100, 10)]) +@pytest.mark.parametrize("groupby", [[0], [0, 1]]) +@pytest.mark.parametrize("q", [[0.5, 0.6]]) +def test_groupby_quantile_with_arraylike_q_and_int_columns(frame_size, groupby, q): + # GH30289 + nrow, ncol = frame_size + df = DataFrame(np.array([ncol * [_ % 4] for _ in range(nrow)]), columns=range(ncol)) + + idx_levels = [np.arange(min(nrow, 4))] * len(groupby) + [q] + idx_codes = [[x for x in range(min(nrow, 4)) for _ in q]] * len(groupby) + [ + list(range(len(q))) * min(nrow, 4) + ] + expected_index = pd.MultiIndex( + levels=idx_levels, codes=idx_codes, names=groupby + [None] + ) + expected_values = [ + [float(x)] * (ncol - len(groupby)) for x in range(min(nrow, 4)) for _ in q + ] + expected_columns = [x for x in range(ncol) if x not in groupby] + expected = DataFrame( + expected_values, index=expected_index, columns=expected_columns + ) + result = df.groupby(groupby).quantile(q) + + tm.assert_frame_equal(result, expected) + + +def test_quantile_raises(): + df = DataFrame([["foo", "a"], ["foo", "b"], ["foo", "c"]], columns=["key", "val"]) + + msg = "dtype '(object|str)' does not support operation 'quantile'" + with pytest.raises(TypeError, match=msg): + df.groupby("key").quantile() + + +def test_quantile_out_of_bounds_q_raises(): + # https://github.com/pandas-dev/pandas/issues/27470 + df = DataFrame({"a": [0, 0, 0, 1, 1, 1], "b": range(6)}) + g = df.groupby([0, 0, 0, 1, 1, 1]) + with pytest.raises(ValueError, match="Got '50.0' instead"): + g.quantile(50) + + with pytest.raises(ValueError, match="Got '-1.0' instead"): + g.quantile(-1) + + +def test_quantile_missing_group_values_no_segfaults(): + # GH 28662 + data = np.array([1.0, np.nan, 1.0]) + df = DataFrame({"key": data, "val": range(3)}) + + # Random segfaults; would have been guaranteed in loop + grp = df.groupby("key") + for _ in range(100): + grp.quantile() + + +@pytest.mark.parametrize( + "key, val, expected_key, expected_val", + [ + ([1.0, np.nan, 3.0, np.nan], range(4), [1.0, 3.0], [0.0, 2.0]), + ([1.0, np.nan, 2.0, 2.0], range(4), [1.0, 2.0], [0.0, 2.5]), + (["a", "b", "b", np.nan], range(4), ["a", "b"], [0, 1.5]), + ([0], [42], [0], [42.0]), + ([], [], np.array([], dtype="float64"), np.array([], dtype="float64")), + ], +) +def test_quantile_missing_group_values_correct_results( + key, val, expected_key, expected_val +): + # GH 28662, GH 33200, GH 33569 + df = DataFrame({"key": key, "val": val}) + + expected = DataFrame( + expected_val, index=Index(expected_key, name="key"), columns=["val"] + ) + + grp = df.groupby("key") + + result = grp.quantile(0.5) + tm.assert_frame_equal(result, expected) + + result = grp.quantile() + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "values", + [ + pd.array([1, 0, None] * 2, dtype="Int64"), + pd.array([True, False, None] * 2, dtype="boolean"), + ], +) +@pytest.mark.parametrize("q", [0.5, [0.0, 0.5, 1.0]]) +def test_groupby_quantile_nullable_array(values, q): + # https://github.com/pandas-dev/pandas/issues/33136 + df = DataFrame({"a": ["x"] * 3 + ["y"] * 3, "b": values}) + result = df.groupby("a")["b"].quantile(q) + + if isinstance(q, list): + idx = pd.MultiIndex.from_product((["x", "y"], q), names=["a", None]) + true_quantiles = [0.0, 0.5, 1.0] + else: + idx = Index(["x", "y"], name="a") + true_quantiles = [0.5] + + expected = pd.Series(true_quantiles * 2, index=idx, name="b", dtype="Float64") + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("q", [0.5, [0.0, 0.5, 1.0]]) +@pytest.mark.parametrize("numeric_only", [True, False]) +def test_groupby_quantile_raises_on_invalid_dtype(q, numeric_only): + df = DataFrame({"a": [1], "b": [2.0], "c": ["x"]}) + if numeric_only: + result = df.groupby("a").quantile(q, numeric_only=numeric_only) + expected = df.groupby("a")[["b"]].quantile(q) + tm.assert_frame_equal(result, expected) + else: + msg = "dtype '.*' does not support operation 'quantile'" + with pytest.raises(TypeError, match=msg): + df.groupby("a").quantile(q, numeric_only=numeric_only) + + +def test_groupby_quantile_NA_float(any_float_dtype): + # GH#42849 + df = DataFrame({"x": [1, 1], "y": [0.2, np.nan]}, dtype=any_float_dtype) + result = df.groupby("x")["y"].quantile(0.5) + exp_index = Index([1.0], dtype=any_float_dtype, name="x") + + if any_float_dtype in ["Float32", "Float64"]: + expected_dtype = any_float_dtype + else: + expected_dtype = None + + expected = pd.Series([0.2], dtype=expected_dtype, index=exp_index, name="y") + tm.assert_series_equal(result, expected) + + result = df.groupby("x")["y"].quantile([0.5, 0.75]) + expected = pd.Series( + [0.2] * 2, + index=pd.MultiIndex.from_product((exp_index, [0.5, 0.75]), names=["x", None]), + name="y", + dtype=expected_dtype, + ) + tm.assert_series_equal(result, expected) + + +def test_groupby_quantile_NA_int(any_int_ea_dtype): + # GH#42849 + df = DataFrame({"x": [1, 1], "y": [2, 5]}, dtype=any_int_ea_dtype) + result = df.groupby("x")["y"].quantile(0.5) + expected = pd.Series( + [3.5], + dtype="Float64", + index=Index([1], name="x", dtype=any_int_ea_dtype), + name="y", + ) + tm.assert_series_equal(expected, result) + + result = df.groupby("x").quantile(0.5) + expected = DataFrame( + {"y": 3.5}, dtype="Float64", index=Index([1], name="x", dtype=any_int_ea_dtype) + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "interpolation, val1, val2", [("lower", 2, 2), ("higher", 2, 3), ("nearest", 2, 2)] +) +def test_groupby_quantile_all_na_group_masked( + interpolation, val1, val2, any_numeric_ea_dtype +): + # GH#37493 + df = DataFrame( + {"a": [1, 1, 1, 2], "b": [1, 2, 3, pd.NA]}, dtype=any_numeric_ea_dtype + ) + result = df.groupby("a").quantile(q=[0.5, 0.7], interpolation=interpolation) + expected = DataFrame( + {"b": [val1, val2, pd.NA, pd.NA]}, + dtype=any_numeric_ea_dtype, + index=pd.MultiIndex.from_arrays( + [pd.Series([1, 1, 2, 2], dtype=any_numeric_ea_dtype), [0.5, 0.7, 0.5, 0.7]], + names=["a", None], + ), + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("interpolation", ["midpoint", "linear"]) +def test_groupby_quantile_all_na_group_masked_interp( + interpolation, any_numeric_ea_dtype +): + # GH#37493 + df = DataFrame( + {"a": [1, 1, 1, 2], "b": [1, 2, 3, pd.NA]}, dtype=any_numeric_ea_dtype + ) + result = df.groupby("a").quantile(q=[0.5, 0.75], interpolation=interpolation) + + if any_numeric_ea_dtype == "Float32": + expected_dtype = any_numeric_ea_dtype + else: + expected_dtype = "Float64" + + expected = DataFrame( + {"b": [2.0, 2.5, pd.NA, pd.NA]}, + dtype=expected_dtype, + index=pd.MultiIndex.from_arrays( + [ + pd.Series([1, 1, 2, 2], dtype=any_numeric_ea_dtype), + [0.5, 0.75, 0.5, 0.75], + ], + names=["a", None], + ), + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("dtype", ["Float64", "Float32"]) +def test_groupby_quantile_allNA_column(dtype): + # GH#42849 + df = DataFrame({"x": [1, 1], "y": [pd.NA] * 2}, dtype=dtype) + result = df.groupby("x")["y"].quantile(0.5) + expected = pd.Series( + [np.nan], dtype=dtype, index=Index([1.0], dtype=dtype), name="y" + ) + expected.index.name = "x" + tm.assert_series_equal(expected, result) + + +def test_groupby_timedelta_quantile(): + # GH: 29485 + df = DataFrame( + {"value": pd.to_timedelta(np.arange(4), unit="s"), "group": [1, 1, 2, 2]} + ) + result = df.groupby("group").quantile(0.99) + expected = DataFrame( + { + "value": [ + pd.Timedelta("0 days 00:00:00.990000"), + pd.Timedelta("0 days 00:00:02.990000"), + ] + }, + index=Index([1, 2], name="group"), + ) + tm.assert_frame_equal(result, expected) + + +def test_columns_groupby_quantile(): + # GH 33795 + df = DataFrame( + np.arange(12).reshape(3, -1), + index=list("XYZ"), + columns=pd.Series(list("ABAB"), name="col"), + ) + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + gb = df.groupby("col", axis=1) + result = gb.quantile(q=[0.8, 0.2]) + expected = DataFrame( + [ + [1.6, 0.4, 2.6, 1.4], + [5.6, 4.4, 6.6, 5.4], + [9.6, 8.4, 10.6, 9.4], + ], + index=list("XYZ"), + columns=pd.MultiIndex.from_tuples( + [("A", 0.8), ("A", 0.2), ("B", 0.8), ("B", 0.2)], names=["col", None] + ), + ) + + tm.assert_frame_equal(result, expected) + + +def test_timestamp_groupby_quantile(unit): + # GH 33168 + dti = pd.date_range( + start="2020-04-19 00:00:00", freq="1min", periods=100, tz="UTC", unit=unit + ).floor("1h") + df = DataFrame( + { + "timestamp": dti, + "category": list(range(1, 101)), + "value": list(range(101, 201)), + } + ) + + result = df.groupby("timestamp").quantile([0.2, 0.8]) + + mi = pd.MultiIndex.from_product([dti[::99], [0.2, 0.8]], names=("timestamp", None)) + expected = DataFrame( + [ + {"category": 12.8, "value": 112.8}, + {"category": 48.2, "value": 148.2}, + {"category": 68.8, "value": 168.8}, + {"category": 92.2, "value": 192.2}, + ], + index=mi, + ) + + tm.assert_frame_equal(result, expected) + + +def test_groupby_quantile_dt64tz_period(): + # GH#51373 + dti = pd.date_range("2016-01-01", periods=1000) + df = pd.Series(dti).to_frame().copy() + df[1] = dti.tz_localize("US/Pacific") + df[2] = dti.to_period("D") + df[3] = dti - dti[0] + df.iloc[-1] = pd.NaT + + by = np.tile(np.arange(5), 200) + gb = df.groupby(by) + + result = gb.quantile(0.5) + + # Check that we match the group-by-group result + exp = {i: df.iloc[i::5].quantile(0.5) for i in range(5)} + expected = DataFrame(exp).T.infer_objects() + expected.index = expected.index.astype(int) + + tm.assert_frame_equal(result, expected) + + +def test_groupby_quantile_nonmulti_levels_order(): + # Non-regression test for GH #53009 + ind = pd.MultiIndex.from_tuples( + [ + (0, "a", "B"), + (0, "a", "A"), + (0, "b", "B"), + (0, "b", "A"), + (1, "a", "B"), + (1, "a", "A"), + (1, "b", "B"), + (1, "b", "A"), + ], + names=["sample", "cat0", "cat1"], + ) + ser = pd.Series(range(8), index=ind) + result = ser.groupby(level="cat1", sort=False).quantile([0.2, 0.8]) + + qind = pd.MultiIndex.from_tuples( + [("B", 0.2), ("B", 0.8), ("A", 0.2), ("A", 0.8)], names=["cat1", None] + ) + expected = pd.Series([1.2, 4.8, 2.2, 5.8], index=qind) + + tm.assert_series_equal(result, expected) + + # We need to check that index levels are not sorted + expected_levels = pd.core.indexes.frozen.FrozenList([["B", "A"], [0.2, 0.8]]) + tm.assert_equal(result.index.levels, expected_levels) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_rank.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_rank.py new file mode 100644 index 0000000000000000000000000000000000000000..a3b7da3fa836c955d8d0e4e17754d7834e5c05f1 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_rank.py @@ -0,0 +1,721 @@ +from datetime import datetime + +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + DataFrame, + NaT, + Series, + concat, +) +import pandas._testing as tm + + +def test_rank_unordered_categorical_typeerror(): + # GH#51034 should be TypeError, not NotImplementedError + cat = pd.Categorical([], ordered=False) + ser = Series(cat) + df = ser.to_frame() + + msg = "Cannot perform rank with non-ordered Categorical" + + gb = ser.groupby(cat, observed=False) + with pytest.raises(TypeError, match=msg): + gb.rank() + + gb2 = df.groupby(cat, observed=False) + with pytest.raises(TypeError, match=msg): + gb2.rank() + + +def test_rank_apply(): + lev1 = np.array(["a" * 10] * 100, dtype=object) + lev2 = np.array(["b" * 10] * 130, dtype=object) + lab1 = np.random.default_rng(2).integers(0, 100, size=500, dtype=int) + lab2 = np.random.default_rng(2).integers(0, 130, size=500, dtype=int) + + df = DataFrame( + { + "value": np.random.default_rng(2).standard_normal(500), + "key1": lev1.take(lab1), + "key2": lev2.take(lab2), + } + ) + + result = df.groupby(["key1", "key2"]).value.rank() + + expected = [piece.value.rank() for key, piece in df.groupby(["key1", "key2"])] + expected = concat(expected, axis=0) + expected = expected.reindex(result.index) + tm.assert_series_equal(result, expected) + + result = df.groupby(["key1", "key2"]).value.rank(pct=True) + + expected = [ + piece.value.rank(pct=True) for key, piece in df.groupby(["key1", "key2"]) + ] + expected = concat(expected, axis=0) + expected = expected.reindex(result.index) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("grps", [["qux"], ["qux", "quux"]]) +@pytest.mark.parametrize( + "vals", + [ + np.array([2, 2, 8, 2, 6], dtype=dtype) + for dtype in ["i8", "i4", "i2", "i1", "u8", "u4", "u2", "u1", "f8", "f4", "f2"] + ] + + [ + [ + pd.Timestamp("2018-01-02"), + pd.Timestamp("2018-01-02"), + pd.Timestamp("2018-01-08"), + pd.Timestamp("2018-01-02"), + pd.Timestamp("2018-01-06"), + ], + [ + pd.Timestamp("2018-01-02", tz="US/Pacific"), + pd.Timestamp("2018-01-02", tz="US/Pacific"), + pd.Timestamp("2018-01-08", tz="US/Pacific"), + pd.Timestamp("2018-01-02", tz="US/Pacific"), + pd.Timestamp("2018-01-06", tz="US/Pacific"), + ], + [ + pd.Timestamp("2018-01-02") - pd.Timestamp(0), + pd.Timestamp("2018-01-02") - pd.Timestamp(0), + pd.Timestamp("2018-01-08") - pd.Timestamp(0), + pd.Timestamp("2018-01-02") - pd.Timestamp(0), + pd.Timestamp("2018-01-06") - pd.Timestamp(0), + ], + [ + pd.Timestamp("2018-01-02").to_period("D"), + pd.Timestamp("2018-01-02").to_period("D"), + pd.Timestamp("2018-01-08").to_period("D"), + pd.Timestamp("2018-01-02").to_period("D"), + pd.Timestamp("2018-01-06").to_period("D"), + ], + ], + ids=lambda x: type(x[0]), +) +@pytest.mark.parametrize( + "ties_method,ascending,pct,exp", + [ + ("average", True, False, [2.0, 2.0, 5.0, 2.0, 4.0]), + ("average", True, True, [0.4, 0.4, 1.0, 0.4, 0.8]), + ("average", False, False, [4.0, 4.0, 1.0, 4.0, 2.0]), + ("average", False, True, [0.8, 0.8, 0.2, 0.8, 0.4]), + ("min", True, False, [1.0, 1.0, 5.0, 1.0, 4.0]), + ("min", True, True, [0.2, 0.2, 1.0, 0.2, 0.8]), + ("min", False, False, [3.0, 3.0, 1.0, 3.0, 2.0]), + ("min", False, True, [0.6, 0.6, 0.2, 0.6, 0.4]), + ("max", True, False, [3.0, 3.0, 5.0, 3.0, 4.0]), + ("max", True, True, [0.6, 0.6, 1.0, 0.6, 0.8]), + ("max", False, False, [5.0, 5.0, 1.0, 5.0, 2.0]), + ("max", False, True, [1.0, 1.0, 0.2, 1.0, 0.4]), + ("first", True, False, [1.0, 2.0, 5.0, 3.0, 4.0]), + ("first", True, True, [0.2, 0.4, 1.0, 0.6, 0.8]), + ("first", False, False, [3.0, 4.0, 1.0, 5.0, 2.0]), + ("first", False, True, [0.6, 0.8, 0.2, 1.0, 0.4]), + ("dense", True, False, [1.0, 1.0, 3.0, 1.0, 2.0]), + ("dense", True, True, [1.0 / 3.0, 1.0 / 3.0, 3.0 / 3.0, 1.0 / 3.0, 2.0 / 3.0]), + ("dense", False, False, [3.0, 3.0, 1.0, 3.0, 2.0]), + ("dense", False, True, [3.0 / 3.0, 3.0 / 3.0, 1.0 / 3.0, 3.0 / 3.0, 2.0 / 3.0]), + ], +) +def test_rank_args(grps, vals, ties_method, ascending, pct, exp): + key = np.repeat(grps, len(vals)) + + orig_vals = vals + vals = list(vals) * len(grps) + if isinstance(orig_vals, np.ndarray): + vals = np.array(vals, dtype=orig_vals.dtype) + + df = DataFrame({"key": key, "val": vals}) + result = df.groupby("key").rank(method=ties_method, ascending=ascending, pct=pct) + + exp_df = DataFrame(exp * len(grps), columns=["val"]) + tm.assert_frame_equal(result, exp_df) + + +@pytest.mark.parametrize("grps", [["qux"], ["qux", "quux"]]) +@pytest.mark.parametrize( + "vals", [[-np.inf, -np.inf, np.nan, 1.0, np.nan, np.inf, np.inf]] +) +@pytest.mark.parametrize( + "ties_method,ascending,na_option,exp", + [ + ("average", True, "keep", [1.5, 1.5, np.nan, 3, np.nan, 4.5, 4.5]), + ("average", True, "top", [3.5, 3.5, 1.5, 5.0, 1.5, 6.5, 6.5]), + ("average", True, "bottom", [1.5, 1.5, 6.5, 3.0, 6.5, 4.5, 4.5]), + ("average", False, "keep", [4.5, 4.5, np.nan, 3, np.nan, 1.5, 1.5]), + ("average", False, "top", [6.5, 6.5, 1.5, 5.0, 1.5, 3.5, 3.5]), + ("average", False, "bottom", [4.5, 4.5, 6.5, 3.0, 6.5, 1.5, 1.5]), + ("min", True, "keep", [1.0, 1.0, np.nan, 3.0, np.nan, 4.0, 4.0]), + ("min", True, "top", [3.0, 3.0, 1.0, 5.0, 1.0, 6.0, 6.0]), + ("min", True, "bottom", [1.0, 1.0, 6.0, 3.0, 6.0, 4.0, 4.0]), + ("min", False, "keep", [4.0, 4.0, np.nan, 3.0, np.nan, 1.0, 1.0]), + ("min", False, "top", [6.0, 6.0, 1.0, 5.0, 1.0, 3.0, 3.0]), + ("min", False, "bottom", [4.0, 4.0, 6.0, 3.0, 6.0, 1.0, 1.0]), + ("max", True, "keep", [2.0, 2.0, np.nan, 3.0, np.nan, 5.0, 5.0]), + ("max", True, "top", [4.0, 4.0, 2.0, 5.0, 2.0, 7.0, 7.0]), + ("max", True, "bottom", [2.0, 2.0, 7.0, 3.0, 7.0, 5.0, 5.0]), + ("max", False, "keep", [5.0, 5.0, np.nan, 3.0, np.nan, 2.0, 2.0]), + ("max", False, "top", [7.0, 7.0, 2.0, 5.0, 2.0, 4.0, 4.0]), + ("max", False, "bottom", [5.0, 5.0, 7.0, 3.0, 7.0, 2.0, 2.0]), + ("first", True, "keep", [1.0, 2.0, np.nan, 3.0, np.nan, 4.0, 5.0]), + ("first", True, "top", [3.0, 4.0, 1.0, 5.0, 2.0, 6.0, 7.0]), + ("first", True, "bottom", [1.0, 2.0, 6.0, 3.0, 7.0, 4.0, 5.0]), + ("first", False, "keep", [4.0, 5.0, np.nan, 3.0, np.nan, 1.0, 2.0]), + ("first", False, "top", [6.0, 7.0, 1.0, 5.0, 2.0, 3.0, 4.0]), + ("first", False, "bottom", [4.0, 5.0, 6.0, 3.0, 7.0, 1.0, 2.0]), + ("dense", True, "keep", [1.0, 1.0, np.nan, 2.0, np.nan, 3.0, 3.0]), + ("dense", True, "top", [2.0, 2.0, 1.0, 3.0, 1.0, 4.0, 4.0]), + ("dense", True, "bottom", [1.0, 1.0, 4.0, 2.0, 4.0, 3.0, 3.0]), + ("dense", False, "keep", [3.0, 3.0, np.nan, 2.0, np.nan, 1.0, 1.0]), + ("dense", False, "top", [4.0, 4.0, 1.0, 3.0, 1.0, 2.0, 2.0]), + ("dense", False, "bottom", [3.0, 3.0, 4.0, 2.0, 4.0, 1.0, 1.0]), + ], +) +def test_infs_n_nans(grps, vals, ties_method, ascending, na_option, exp): + # GH 20561 + key = np.repeat(grps, len(vals)) + vals = vals * len(grps) + df = DataFrame({"key": key, "val": vals}) + result = df.groupby("key").rank( + method=ties_method, ascending=ascending, na_option=na_option + ) + exp_df = DataFrame(exp * len(grps), columns=["val"]) + tm.assert_frame_equal(result, exp_df) + + +@pytest.mark.parametrize("grps", [["qux"], ["qux", "quux"]]) +@pytest.mark.parametrize( + "vals", + [ + np.array([2, 2, np.nan, 8, 2, 6, np.nan, np.nan], dtype=dtype) + for dtype in ["f8", "f4", "f2"] + ] + + [ + [ + pd.Timestamp("2018-01-02"), + pd.Timestamp("2018-01-02"), + np.nan, + pd.Timestamp("2018-01-08"), + pd.Timestamp("2018-01-02"), + pd.Timestamp("2018-01-06"), + np.nan, + np.nan, + ], + [ + pd.Timestamp("2018-01-02", tz="US/Pacific"), + pd.Timestamp("2018-01-02", tz="US/Pacific"), + np.nan, + pd.Timestamp("2018-01-08", tz="US/Pacific"), + pd.Timestamp("2018-01-02", tz="US/Pacific"), + pd.Timestamp("2018-01-06", tz="US/Pacific"), + np.nan, + np.nan, + ], + [ + pd.Timestamp("2018-01-02") - pd.Timestamp(0), + pd.Timestamp("2018-01-02") - pd.Timestamp(0), + np.nan, + pd.Timestamp("2018-01-08") - pd.Timestamp(0), + pd.Timestamp("2018-01-02") - pd.Timestamp(0), + pd.Timestamp("2018-01-06") - pd.Timestamp(0), + np.nan, + np.nan, + ], + [ + pd.Timestamp("2018-01-02").to_period("D"), + pd.Timestamp("2018-01-02").to_period("D"), + np.nan, + pd.Timestamp("2018-01-08").to_period("D"), + pd.Timestamp("2018-01-02").to_period("D"), + pd.Timestamp("2018-01-06").to_period("D"), + np.nan, + np.nan, + ], + ], + ids=lambda x: type(x[0]), +) +@pytest.mark.parametrize( + "ties_method,ascending,na_option,pct,exp", + [ + ( + "average", + True, + "keep", + False, + [2.0, 2.0, np.nan, 5.0, 2.0, 4.0, np.nan, np.nan], + ), + ( + "average", + True, + "keep", + True, + [0.4, 0.4, np.nan, 1.0, 0.4, 0.8, np.nan, np.nan], + ), + ( + "average", + False, + "keep", + False, + [4.0, 4.0, np.nan, 1.0, 4.0, 2.0, np.nan, np.nan], + ), + ( + "average", + False, + "keep", + True, + [0.8, 0.8, np.nan, 0.2, 0.8, 0.4, np.nan, np.nan], + ), + ("min", True, "keep", False, [1.0, 1.0, np.nan, 5.0, 1.0, 4.0, np.nan, np.nan]), + ("min", True, "keep", True, [0.2, 0.2, np.nan, 1.0, 0.2, 0.8, np.nan, np.nan]), + ( + "min", + False, + "keep", + False, + [3.0, 3.0, np.nan, 1.0, 3.0, 2.0, np.nan, np.nan], + ), + ("min", False, "keep", True, [0.6, 0.6, np.nan, 0.2, 0.6, 0.4, np.nan, np.nan]), + ("max", True, "keep", False, [3.0, 3.0, np.nan, 5.0, 3.0, 4.0, np.nan, np.nan]), + ("max", True, "keep", True, [0.6, 0.6, np.nan, 1.0, 0.6, 0.8, np.nan, np.nan]), + ( + "max", + False, + "keep", + False, + [5.0, 5.0, np.nan, 1.0, 5.0, 2.0, np.nan, np.nan], + ), + ("max", False, "keep", True, [1.0, 1.0, np.nan, 0.2, 1.0, 0.4, np.nan, np.nan]), + ( + "first", + True, + "keep", + False, + [1.0, 2.0, np.nan, 5.0, 3.0, 4.0, np.nan, np.nan], + ), + ( + "first", + True, + "keep", + True, + [0.2, 0.4, np.nan, 1.0, 0.6, 0.8, np.nan, np.nan], + ), + ( + "first", + False, + "keep", + False, + [3.0, 4.0, np.nan, 1.0, 5.0, 2.0, np.nan, np.nan], + ), + ( + "first", + False, + "keep", + True, + [0.6, 0.8, np.nan, 0.2, 1.0, 0.4, np.nan, np.nan], + ), + ( + "dense", + True, + "keep", + False, + [1.0, 1.0, np.nan, 3.0, 1.0, 2.0, np.nan, np.nan], + ), + ( + "dense", + True, + "keep", + True, + [ + 1.0 / 3.0, + 1.0 / 3.0, + np.nan, + 3.0 / 3.0, + 1.0 / 3.0, + 2.0 / 3.0, + np.nan, + np.nan, + ], + ), + ( + "dense", + False, + "keep", + False, + [3.0, 3.0, np.nan, 1.0, 3.0, 2.0, np.nan, np.nan], + ), + ( + "dense", + False, + "keep", + True, + [ + 3.0 / 3.0, + 3.0 / 3.0, + np.nan, + 1.0 / 3.0, + 3.0 / 3.0, + 2.0 / 3.0, + np.nan, + np.nan, + ], + ), + ("average", True, "bottom", False, [2.0, 2.0, 7.0, 5.0, 2.0, 4.0, 7.0, 7.0]), + ( + "average", + True, + "bottom", + True, + [0.25, 0.25, 0.875, 0.625, 0.25, 0.5, 0.875, 0.875], + ), + ("average", False, "bottom", False, [4.0, 4.0, 7.0, 1.0, 4.0, 2.0, 7.0, 7.0]), + ( + "average", + False, + "bottom", + True, + [0.5, 0.5, 0.875, 0.125, 0.5, 0.25, 0.875, 0.875], + ), + ("min", True, "bottom", False, [1.0, 1.0, 6.0, 5.0, 1.0, 4.0, 6.0, 6.0]), + ( + "min", + True, + "bottom", + True, + [0.125, 0.125, 0.75, 0.625, 0.125, 0.5, 0.75, 0.75], + ), + ("min", False, "bottom", False, [3.0, 3.0, 6.0, 1.0, 3.0, 2.0, 6.0, 6.0]), + ( + "min", + False, + "bottom", + True, + [0.375, 0.375, 0.75, 0.125, 0.375, 0.25, 0.75, 0.75], + ), + ("max", True, "bottom", False, [3.0, 3.0, 8.0, 5.0, 3.0, 4.0, 8.0, 8.0]), + ("max", True, "bottom", True, [0.375, 0.375, 1.0, 0.625, 0.375, 0.5, 1.0, 1.0]), + ("max", False, "bottom", False, [5.0, 5.0, 8.0, 1.0, 5.0, 2.0, 8.0, 8.0]), + ( + "max", + False, + "bottom", + True, + [0.625, 0.625, 1.0, 0.125, 0.625, 0.25, 1.0, 1.0], + ), + ("first", True, "bottom", False, [1.0, 2.0, 6.0, 5.0, 3.0, 4.0, 7.0, 8.0]), + ( + "first", + True, + "bottom", + True, + [0.125, 0.25, 0.75, 0.625, 0.375, 0.5, 0.875, 1.0], + ), + ("first", False, "bottom", False, [3.0, 4.0, 6.0, 1.0, 5.0, 2.0, 7.0, 8.0]), + ( + "first", + False, + "bottom", + True, + [0.375, 0.5, 0.75, 0.125, 0.625, 0.25, 0.875, 1.0], + ), + ("dense", True, "bottom", False, [1.0, 1.0, 4.0, 3.0, 1.0, 2.0, 4.0, 4.0]), + ("dense", True, "bottom", True, [0.25, 0.25, 1.0, 0.75, 0.25, 0.5, 1.0, 1.0]), + ("dense", False, "bottom", False, [3.0, 3.0, 4.0, 1.0, 3.0, 2.0, 4.0, 4.0]), + ("dense", False, "bottom", True, [0.75, 0.75, 1.0, 0.25, 0.75, 0.5, 1.0, 1.0]), + ], +) +def test_rank_args_missing(grps, vals, ties_method, ascending, na_option, pct, exp): + key = np.repeat(grps, len(vals)) + + orig_vals = vals + vals = list(vals) * len(grps) + if isinstance(orig_vals, np.ndarray): + vals = np.array(vals, dtype=orig_vals.dtype) + + df = DataFrame({"key": key, "val": vals}) + result = df.groupby("key").rank( + method=ties_method, ascending=ascending, na_option=na_option, pct=pct + ) + + exp_df = DataFrame(exp * len(grps), columns=["val"]) + tm.assert_frame_equal(result, exp_df) + + +@pytest.mark.parametrize( + "pct,exp", [(False, [3.0, 3.0, 3.0, 3.0, 3.0]), (True, [0.6, 0.6, 0.6, 0.6, 0.6])] +) +def test_rank_resets_each_group(pct, exp): + df = DataFrame( + {"key": ["a", "a", "a", "a", "a", "b", "b", "b", "b", "b"], "val": [1] * 10} + ) + result = df.groupby("key").rank(pct=pct) + exp_df = DataFrame(exp * 2, columns=["val"]) + tm.assert_frame_equal(result, exp_df) + + +@pytest.mark.parametrize( + "dtype", ["int64", "int32", "uint64", "uint32", "float64", "float32"] +) +@pytest.mark.parametrize("upper", [True, False]) +def test_rank_avg_even_vals(dtype, upper): + if upper: + # use IntegerDtype/FloatingDtype + dtype = dtype[0].upper() + dtype[1:] + dtype = dtype.replace("Ui", "UI") + df = DataFrame({"key": ["a"] * 4, "val": [1] * 4}) + df["val"] = df["val"].astype(dtype) + assert df["val"].dtype == dtype + + result = df.groupby("key").rank() + exp_df = DataFrame([2.5, 2.5, 2.5, 2.5], columns=["val"]) + if upper: + exp_df = exp_df.astype("Float64") + tm.assert_frame_equal(result, exp_df) + + +@pytest.mark.parametrize("ties_method", ["average", "min", "max", "first", "dense"]) +@pytest.mark.parametrize("ascending", [True, False]) +@pytest.mark.parametrize("na_option", ["keep", "top", "bottom"]) +@pytest.mark.parametrize("pct", [True, False]) +@pytest.mark.parametrize( + "vals", [["bar", "bar", "foo", "bar", "baz"], ["bar", np.nan, "foo", np.nan, "baz"]] +) +def test_rank_object_dtype(ties_method, ascending, na_option, pct, vals): + df = DataFrame({"key": ["foo"] * 5, "val": vals}) + mask = df["val"].isna() + + gb = df.groupby("key") + res = gb.rank(method=ties_method, ascending=ascending, na_option=na_option, pct=pct) + + # construct our expected by using numeric values with the same ordering + if mask.any(): + df2 = DataFrame({"key": ["foo"] * 5, "val": [0, np.nan, 2, np.nan, 1]}) + else: + df2 = DataFrame({"key": ["foo"] * 5, "val": [0, 0, 2, 0, 1]}) + + gb2 = df2.groupby("key") + alt = gb2.rank( + method=ties_method, ascending=ascending, na_option=na_option, pct=pct + ) + + tm.assert_frame_equal(res, alt) + + +@pytest.mark.parametrize("na_option", [True, "bad", 1]) +@pytest.mark.parametrize("ties_method", ["average", "min", "max", "first", "dense"]) +@pytest.mark.parametrize("ascending", [True, False]) +@pytest.mark.parametrize("pct", [True, False]) +@pytest.mark.parametrize( + "vals", + [ + ["bar", "bar", "foo", "bar", "baz"], + ["bar", np.nan, "foo", np.nan, "baz"], + [1, np.nan, 2, np.nan, 3], + ], +) +def test_rank_naoption_raises(ties_method, ascending, na_option, pct, vals): + df = DataFrame({"key": ["foo"] * 5, "val": vals}) + msg = "na_option must be one of 'keep', 'top', or 'bottom'" + + with pytest.raises(ValueError, match=msg): + df.groupby("key").rank( + method=ties_method, ascending=ascending, na_option=na_option, pct=pct + ) + + +def test_rank_empty_group(): + # see gh-22519 + column = "A" + df = DataFrame({"A": [0, 1, 0], "B": [1.0, np.nan, 2.0]}) + + result = df.groupby(column).B.rank(pct=True) + expected = Series([0.5, np.nan, 1.0], name="B") + tm.assert_series_equal(result, expected) + + result = df.groupby(column).rank(pct=True) + expected = DataFrame({"B": [0.5, np.nan, 1.0]}) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "input_key,input_value,output_value", + [ + ([1, 2], [1, 1], [1.0, 1.0]), + ([1, 1, 2, 2], [1, 2, 1, 2], [0.5, 1.0, 0.5, 1.0]), + ([1, 1, 2, 2], [1, 2, 1, np.nan], [0.5, 1.0, 1.0, np.nan]), + ([1, 1, 2], [1, 2, np.nan], [0.5, 1.0, np.nan]), + ], +) +def test_rank_zero_div(input_key, input_value, output_value): + # GH 23666 + df = DataFrame({"A": input_key, "B": input_value}) + + result = df.groupby("A").rank(method="dense", pct=True) + expected = DataFrame({"B": output_value}) + tm.assert_frame_equal(result, expected) + + +def test_rank_min_int(): + # GH-32859 + df = DataFrame( + { + "grp": [1, 1, 2], + "int_col": [ + np.iinfo(np.int64).min, + np.iinfo(np.int64).max, + np.iinfo(np.int64).min, + ], + "datetimelike": [NaT, datetime(2001, 1, 1), NaT], + } + ) + + result = df.groupby("grp").rank() + expected = DataFrame( + {"int_col": [1.0, 2.0, 1.0], "datetimelike": [np.nan, 1.0, np.nan]} + ) + + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("use_nan", [True, False]) +def test_rank_pct_equal_values_on_group_transition(use_nan): + # GH#40518 + fill_value = np.nan if use_nan else 3 + df = DataFrame( + [ + [-1, 1], + [-1, 2], + [1, fill_value], + [-1, fill_value], + ], + columns=["group", "val"], + ) + result = df.groupby(["group"])["val"].rank( + method="dense", + pct=True, + ) + if use_nan: + expected = Series([0.5, 1, np.nan, np.nan], name="val") + else: + expected = Series([1 / 3, 2 / 3, 1, 1], name="val") + + tm.assert_series_equal(result, expected) + + +def test_rank_multiindex(): + # GH27721 + df = concat( + { + "a": DataFrame({"col1": [3, 4], "col2": [1, 2]}), + "b": DataFrame({"col3": [5, 6], "col4": [7, 8]}), + }, + axis=1, + ) + + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + gb = df.groupby(level=0, axis=1) + msg = "DataFrameGroupBy.rank with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = gb.rank(axis=1) + + expected = concat( + [ + df["a"].rank(axis=1), + df["b"].rank(axis=1), + ], + axis=1, + keys=["a", "b"], + ) + tm.assert_frame_equal(result, expected) + + +def test_groupby_axis0_rank_axis1(): + # GH#41320 + df = DataFrame( + {0: [1, 3, 5, 7], 1: [2, 4, 6, 8], 2: [1.5, 3.5, 5.5, 7.5]}, + index=["a", "a", "b", "b"], + ) + msg = "The 'axis' keyword in DataFrame.groupby is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + gb = df.groupby(level=0, axis=0) + + msg = "DataFrameGroupBy.rank with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + res = gb.rank(axis=1) + + # This should match what we get when "manually" operating group-by-group + expected = concat([df.loc["a"].rank(axis=1), df.loc["b"].rank(axis=1)], axis=0) + tm.assert_frame_equal(res, expected) + + # check that we haven't accidentally written a case that coincidentally + # matches rank(axis=0) + msg = "The 'axis' keyword in DataFrameGroupBy.rank" + with tm.assert_produces_warning(FutureWarning, match=msg): + alt = gb.rank(axis=0) + assert not alt.equals(expected) + + +def test_groupby_axis0_cummax_axis1(): + # case where groupby axis is 0 and axis keyword in transform is 1 + + # df has mixed dtype -> multiple blocks + df = DataFrame( + {0: [1, 3, 5, 7], 1: [2, 4, 6, 8], 2: [1.5, 3.5, 5.5, 7.5]}, + index=["a", "a", "b", "b"], + ) + msg = "The 'axis' keyword in DataFrame.groupby is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + gb = df.groupby(level=0, axis=0) + + msg = "DataFrameGroupBy.cummax with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + cmax = gb.cummax(axis=1) + expected = df[[0, 1]].astype(np.float64) + expected[2] = expected[1] + tm.assert_frame_equal(cmax, expected) + + +def test_non_unique_index(): + # GH 16577 + df = DataFrame( + {"A": [1.0, 2.0, 3.0, np.nan], "value": 1.0}, + index=[pd.Timestamp("20170101", tz="US/Eastern")] * 4, + ) + result = df.groupby([df.index, "A"]).value.rank(ascending=True, pct=True) + expected = Series( + [1.0, 1.0, 1.0, np.nan], + index=[pd.Timestamp("20170101", tz="US/Eastern")] * 4, + name="value", + ) + tm.assert_series_equal(result, expected) + + +def test_rank_categorical(): + cat = pd.Categorical(["a", "a", "b", np.nan, "c", "b"], ordered=True) + cat2 = pd.Categorical([1, 2, 3, np.nan, 4, 5], ordered=True) + + df = DataFrame({"col1": [0, 1, 0, 1, 0, 1], "col2": cat, "col3": cat2}) + + gb = df.groupby("col1") + + res = gb.rank() + + expected = df.astype(object).groupby("col1").rank() + tm.assert_frame_equal(res, expected) + + +@pytest.mark.parametrize("na_option", ["top", "bottom"]) +def test_groupby_op_with_nullables(na_option): + # GH 54206 + df = DataFrame({"x": [None]}, dtype="Float64") + result = df.groupby("x", dropna=False)["x"].rank(method="min", na_option=na_option) + expected = Series([1.0], dtype="Float64", name=result.name) + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_sample.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_sample.py new file mode 100644 index 0000000000000000000000000000000000000000..4dd474741740d4abdea1ebabf2b36c3b68d690ad --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_sample.py @@ -0,0 +1,154 @@ +import pytest + +from pandas import ( + DataFrame, + Index, + Series, +) +import pandas._testing as tm + + +@pytest.mark.parametrize("n, frac", [(2, None), (None, 0.2)]) +def test_groupby_sample_balanced_groups_shape(n, frac): + values = [1] * 10 + [2] * 10 + df = DataFrame({"a": values, "b": values}) + + result = df.groupby("a").sample(n=n, frac=frac) + values = [1] * 2 + [2] * 2 + expected = DataFrame({"a": values, "b": values}, index=result.index) + tm.assert_frame_equal(result, expected) + + result = df.groupby("a")["b"].sample(n=n, frac=frac) + expected = Series(values, name="b", index=result.index) + tm.assert_series_equal(result, expected) + + +def test_groupby_sample_unbalanced_groups_shape(): + values = [1] * 10 + [2] * 20 + df = DataFrame({"a": values, "b": values}) + + result = df.groupby("a").sample(n=5) + values = [1] * 5 + [2] * 5 + expected = DataFrame({"a": values, "b": values}, index=result.index) + tm.assert_frame_equal(result, expected) + + result = df.groupby("a")["b"].sample(n=5) + expected = Series(values, name="b", index=result.index) + tm.assert_series_equal(result, expected) + + +def test_groupby_sample_index_value_spans_groups(): + values = [1] * 3 + [2] * 3 + df = DataFrame({"a": values, "b": values}, index=[1, 2, 2, 2, 2, 2]) + + result = df.groupby("a").sample(n=2) + values = [1] * 2 + [2] * 2 + expected = DataFrame({"a": values, "b": values}, index=result.index) + tm.assert_frame_equal(result, expected) + + result = df.groupby("a")["b"].sample(n=2) + expected = Series(values, name="b", index=result.index) + tm.assert_series_equal(result, expected) + + +def test_groupby_sample_n_and_frac_raises(): + df = DataFrame({"a": [1, 2], "b": [1, 2]}) + msg = "Please enter a value for `frac` OR `n`, not both" + + with pytest.raises(ValueError, match=msg): + df.groupby("a").sample(n=1, frac=1.0) + + with pytest.raises(ValueError, match=msg): + df.groupby("a")["b"].sample(n=1, frac=1.0) + + +def test_groupby_sample_frac_gt_one_without_replacement_raises(): + df = DataFrame({"a": [1, 2], "b": [1, 2]}) + msg = "Replace has to be set to `True` when upsampling the population `frac` > 1." + + with pytest.raises(ValueError, match=msg): + df.groupby("a").sample(frac=1.5, replace=False) + + with pytest.raises(ValueError, match=msg): + df.groupby("a")["b"].sample(frac=1.5, replace=False) + + +@pytest.mark.parametrize("n", [-1, 1.5]) +def test_groupby_sample_invalid_n_raises(n): + df = DataFrame({"a": [1, 2], "b": [1, 2]}) + + if n < 0: + msg = "A negative number of rows requested. Please provide `n` >= 0." + else: + msg = "Only integers accepted as `n` values" + + with pytest.raises(ValueError, match=msg): + df.groupby("a").sample(n=n) + + with pytest.raises(ValueError, match=msg): + df.groupby("a")["b"].sample(n=n) + + +def test_groupby_sample_oversample(): + values = [1] * 10 + [2] * 10 + df = DataFrame({"a": values, "b": values}) + + result = df.groupby("a").sample(frac=2.0, replace=True) + values = [1] * 20 + [2] * 20 + expected = DataFrame({"a": values, "b": values}, index=result.index) + tm.assert_frame_equal(result, expected) + + result = df.groupby("a")["b"].sample(frac=2.0, replace=True) + expected = Series(values, name="b", index=result.index) + tm.assert_series_equal(result, expected) + + +def test_groupby_sample_without_n_or_frac(): + values = [1] * 10 + [2] * 10 + df = DataFrame({"a": values, "b": values}) + + result = df.groupby("a").sample(n=None, frac=None) + expected = DataFrame({"a": [1, 2], "b": [1, 2]}, index=result.index) + tm.assert_frame_equal(result, expected) + + result = df.groupby("a")["b"].sample(n=None, frac=None) + expected = Series([1, 2], name="b", index=result.index) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "index, expected_index", + [(["w", "x", "y", "z"], ["w", "w", "y", "y"]), ([3, 4, 5, 6], [3, 3, 5, 5])], +) +def test_groupby_sample_with_weights(index, expected_index): + # GH 39927 - tests for integer index needed + values = [1] * 2 + [2] * 2 + df = DataFrame({"a": values, "b": values}, index=Index(index)) + + result = df.groupby("a").sample(n=2, replace=True, weights=[1, 0, 1, 0]) + expected = DataFrame({"a": values, "b": values}, index=Index(expected_index)) + tm.assert_frame_equal(result, expected) + + result = df.groupby("a")["b"].sample(n=2, replace=True, weights=[1, 0, 1, 0]) + expected = Series(values, name="b", index=Index(expected_index)) + tm.assert_series_equal(result, expected) + + +def test_groupby_sample_with_selections(): + # GH 39928 + values = [1] * 10 + [2] * 10 + df = DataFrame({"a": values, "b": values, "c": values}) + + result = df.groupby("a")[["b", "c"]].sample(n=None, frac=None) + expected = DataFrame({"b": [1, 2], "c": [1, 2]}, index=result.index) + tm.assert_frame_equal(result, expected) + + +def test_groupby_sample_with_empty_inputs(): + # GH48459 + df = DataFrame({"a": [], "b": []}) + groupby_df = df.groupby("a") + + result = groupby_df.sample() + expected = df + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_size.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_size.py new file mode 100644 index 0000000000000000000000000000000000000000..4e92fb22f840a15c071cc556421a682785820411 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_size.py @@ -0,0 +1,122 @@ +import numpy as np +import pytest + +from pandas.core.dtypes.common import is_integer_dtype + +from pandas import ( + DataFrame, + Index, + PeriodIndex, + Series, +) +import pandas._testing as tm + + +@pytest.mark.parametrize("by", ["A", "B", ["A", "B"]]) +def test_size(df, by): + grouped = df.groupby(by=by) + result = grouped.size() + for key, group in grouped: + assert result[key] == len(group) + + +@pytest.mark.parametrize( + "by", + [ + [0, 0, 0, 0], + [0, 1, 1, 1], + [1, 0, 1, 1], + [0, None, None, None], + pytest.param([None, None, None, None], marks=pytest.mark.xfail), + ], +) +def test_size_axis_1(df, axis_1, by, sort, dropna): + # GH#45715 + counts = {key: sum(value == key for value in by) for key in dict.fromkeys(by)} + if dropna: + counts = {key: value for key, value in counts.items() if key is not None} + expected = Series(counts, dtype="int64") + if sort: + expected = expected.sort_index() + if is_integer_dtype(expected.index.dtype) and not any(x is None for x in by): + expected.index = expected.index.astype(int) + + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + grouped = df.groupby(by=by, axis=axis_1, sort=sort, dropna=dropna) + result = grouped.size() + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("by", ["A", "B", ["A", "B"]]) +@pytest.mark.parametrize("sort", [True, False]) +def test_size_sort(sort, by): + df = DataFrame(np.random.default_rng(2).choice(20, (1000, 3)), columns=list("ABC")) + left = df.groupby(by=by, sort=sort).size() + right = df.groupby(by=by, sort=sort)["C"].apply(lambda a: a.shape[0]) + tm.assert_series_equal(left, right, check_names=False) + + +def test_size_series_dataframe(): + # https://github.com/pandas-dev/pandas/issues/11699 + df = DataFrame(columns=["A", "B"]) + out = Series(dtype="int64", index=Index([], name="A")) + tm.assert_series_equal(df.groupby("A").size(), out) + + +def test_size_groupby_all_null(): + # https://github.com/pandas-dev/pandas/issues/23050 + # Assert no 'Value Error : Length of passed values is 2, index implies 0' + df = DataFrame({"A": [None, None]}) # all-null groups + result = df.groupby("A").size() + expected = Series(dtype="int64", index=Index([], name="A")) + tm.assert_series_equal(result, expected) + + +def test_size_period_index(): + # https://github.com/pandas-dev/pandas/issues/34010 + ser = Series([1], index=PeriodIndex(["2000"], name="A", freq="D")) + grp = ser.groupby(level="A") + result = grp.size() + tm.assert_series_equal(result, ser) + + +@pytest.mark.parametrize("as_index", [True, False]) +def test_size_on_categorical(as_index): + df = DataFrame([[1, 1], [2, 2]], columns=["A", "B"]) + df["A"] = df["A"].astype("category") + result = df.groupby(["A", "B"], as_index=as_index, observed=False).size() + + expected = DataFrame( + [[1, 1, 1], [1, 2, 0], [2, 1, 0], [2, 2, 1]], columns=["A", "B", "size"] + ) + expected["A"] = expected["A"].astype("category") + if as_index: + expected = expected.set_index(["A", "B"])["size"].rename(None) + + tm.assert_equal(result, expected) + + +@pytest.mark.parametrize("dtype", ["Int64", "Float64", "boolean"]) +def test_size_series_masked_type_returns_Int64(dtype): + # GH 54132 + ser = Series([1, 1, 1], index=["a", "a", "b"], dtype=dtype) + result = ser.groupby(level=0).size() + expected = Series([2, 1], dtype="Int64", index=["a", "b"]) + tm.assert_series_equal(result, expected) + + +def test_size_strings(any_string_dtype, using_infer_string): + # GH#55627 + dtype = any_string_dtype + df = DataFrame({"a": ["a", "a", "b"], "b": "a"}, dtype=dtype) + result = df.groupby("a")["b"].size() + exp_dtype = "Int64" if dtype == "string[pyarrow]" else "int64" + exp_index_dtype = "str" if using_infer_string and dtype == "object" else dtype + expected = Series( + [2, 1], + index=Index(["a", "b"], name="a", dtype=exp_index_dtype), + name="b", + dtype=exp_dtype, + ) + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_skew.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_skew.py new file mode 100644 index 0000000000000000000000000000000000000000..563da89b6ab24a898f042f0e21377ccc2709b072 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_skew.py @@ -0,0 +1,27 @@ +import numpy as np + +import pandas as pd +import pandas._testing as tm + + +def test_groupby_skew_equivalence(): + # Test that that groupby skew method (which uses libgroupby.group_skew) + # matches the results of operating group-by-group (which uses nanops.nanskew) + nrows = 1000 + ngroups = 3 + ncols = 2 + nan_frac = 0.05 + + arr = np.random.default_rng(2).standard_normal((nrows, ncols)) + arr[np.random.default_rng(2).random(nrows) < nan_frac] = np.nan + + df = pd.DataFrame(arr) + grps = np.random.default_rng(2).integers(0, ngroups, size=nrows) + gb = df.groupby(grps) + + result = gb.skew() + + grpwise = [grp.skew().to_frame(i).T for i, grp in gb] + expected = pd.concat(grpwise, axis=0) + expected.index = expected.index.astype(result.index.dtype) # 32bit builds + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_value_counts.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_value_counts.py new file mode 100644 index 0000000000000000000000000000000000000000..476ce1fe1b8ccbbf8eaf5e759d12bd84cc5e89f5 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/methods/test_value_counts.py @@ -0,0 +1,1256 @@ +""" +these are systematically testing all of the args to value_counts +with different size combinations. This is to ensure stability of the sorting +and proper parameter handling +""" + + +import numpy as np +import pytest + +from pandas import ( + Categorical, + CategoricalIndex, + DataFrame, + Grouper, + Index, + MultiIndex, + Series, + date_range, + to_datetime, +) +import pandas._testing as tm +from pandas.util.version import Version + + +def tests_value_counts_index_names_category_column(): + # GH44324 Missing name of index category column + df = DataFrame( + { + "gender": ["female"], + "country": ["US"], + } + ) + df["gender"] = df["gender"].astype("category") + result = df.groupby("country")["gender"].value_counts() + + # Construct expected, very specific multiindex + df_mi_expected = DataFrame([["US", "female"]], columns=["country", "gender"]) + df_mi_expected["gender"] = df_mi_expected["gender"].astype("category") + mi_expected = MultiIndex.from_frame(df_mi_expected) + expected = Series([1], index=mi_expected, name="count") + + tm.assert_series_equal(result, expected) + + +def seed_df(seed_nans, n, m): + days = date_range("2015-08-24", periods=10) + + frame = DataFrame( + { + "1st": np.random.default_rng(2).choice(list("abcd"), n), + "2nd": np.random.default_rng(2).choice(days, n), + "3rd": np.random.default_rng(2).integers(1, m + 1, n), + } + ) + + if seed_nans: + # Explicitly cast to float to avoid implicit cast when setting nan + frame["3rd"] = frame["3rd"].astype("float") + frame.loc[1::11, "1st"] = np.nan + frame.loc[3::17, "2nd"] = np.nan + frame.loc[7::19, "3rd"] = np.nan + frame.loc[8::19, "3rd"] = np.nan + frame.loc[9::19, "3rd"] = np.nan + + return frame + + +@pytest.mark.slow +@pytest.mark.parametrize("seed_nans", [True, False]) +@pytest.mark.parametrize("num_rows", [10, 50]) +@pytest.mark.parametrize("max_int", [5, 20]) +@pytest.mark.parametrize("keys", ["1st", "2nd", ["1st", "2nd"]], ids=repr) +@pytest.mark.parametrize("bins", [None, [0, 5]], ids=repr) +@pytest.mark.parametrize("isort", [True, False]) +@pytest.mark.parametrize("normalize, name", [(True, "proportion"), (False, "count")]) +@pytest.mark.parametrize("sort", [True, False]) +@pytest.mark.parametrize("ascending", [True, False]) +@pytest.mark.parametrize("dropna", [True, False]) +def test_series_groupby_value_counts( + seed_nans, + num_rows, + max_int, + keys, + bins, + isort, + normalize, + name, + sort, + ascending, + dropna, +): + df = seed_df(seed_nans, num_rows, max_int) + + def rebuild_index(df): + arr = list(map(df.index.get_level_values, range(df.index.nlevels))) + df.index = MultiIndex.from_arrays(arr, names=df.index.names) + return df + + kwargs = { + "normalize": normalize, + "sort": sort, + "ascending": ascending, + "dropna": dropna, + "bins": bins, + } + + gr = df.groupby(keys, sort=isort) + left = gr["3rd"].value_counts(**kwargs) + + gr = df.groupby(keys, sort=isort) + right = gr["3rd"].apply(Series.value_counts, **kwargs) + right.index.names = right.index.names[:-1] + ["3rd"] + # https://github.com/pandas-dev/pandas/issues/49909 + right = right.rename(name) + + # have to sort on index because of unstable sort on values + left, right = map(rebuild_index, (left, right)) # xref GH9212 + tm.assert_series_equal(left.sort_index(), right.sort_index()) + + +@pytest.mark.parametrize("utc", [True, False]) +def test_series_groupby_value_counts_with_grouper(utc): + # GH28479 + df = DataFrame( + { + "Timestamp": [ + 1565083561, + 1565083561 + 86400, + 1565083561 + 86500, + 1565083561 + 86400 * 2, + 1565083561 + 86400 * 3, + 1565083561 + 86500 * 3, + 1565083561 + 86400 * 4, + ], + "Food": ["apple", "apple", "banana", "banana", "orange", "orange", "pear"], + } + ).drop([3]) + + df["Datetime"] = to_datetime(df["Timestamp"], utc=utc, unit="s") + dfg = df.groupby(Grouper(freq="1D", key="Datetime")) + + # have to sort on index because of unstable sort on values xref GH9212 + result = dfg["Food"].value_counts().sort_index() + expected = dfg["Food"].apply(Series.value_counts).sort_index() + expected.index.names = result.index.names + # https://github.com/pandas-dev/pandas/issues/49909 + expected = expected.rename("count") + + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("columns", [["A", "B"], ["A", "B", "C"]]) +def test_series_groupby_value_counts_empty(columns): + # GH39172 + df = DataFrame(columns=columns) + dfg = df.groupby(columns[:-1]) + + result = dfg[columns[-1]].value_counts() + expected = Series([], dtype=result.dtype, name="count") + expected.index = MultiIndex.from_arrays([[]] * len(columns), names=columns) + + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("columns", [["A", "B"], ["A", "B", "C"]]) +def test_series_groupby_value_counts_one_row(columns): + # GH42618 + df = DataFrame(data=[range(len(columns))], columns=columns) + dfg = df.groupby(columns[:-1]) + + result = dfg[columns[-1]].value_counts() + expected = df.value_counts() + + tm.assert_series_equal(result, expected) + + +def test_series_groupby_value_counts_on_categorical(): + # GH38672 + + s = Series(Categorical(["a"], categories=["a", "b"])) + result = s.groupby([0]).value_counts() + + expected = Series( + data=[1, 0], + index=MultiIndex.from_arrays( + [ + np.array([0, 0]), + CategoricalIndex( + ["a", "b"], categories=["a", "b"], ordered=False, dtype="category" + ), + ] + ), + name="count", + ) + + # Expected: + # 0 a 1 + # b 0 + # dtype: int64 + + tm.assert_series_equal(result, expected) + + +def test_series_groupby_value_counts_no_sort(): + # GH#50482 + df = DataFrame( + { + "gender": ["male", "male", "female", "male", "female", "male"], + "education": ["low", "medium", "high", "low", "high", "low"], + "country": ["US", "FR", "US", "FR", "FR", "FR"], + } + ) + gb = df.groupby(["country", "gender"], sort=False)["education"] + result = gb.value_counts(sort=False) + index = MultiIndex( + levels=[["US", "FR"], ["male", "female"], ["low", "medium", "high"]], + codes=[[0, 1, 0, 1, 1], [0, 0, 1, 0, 1], [0, 1, 2, 0, 2]], + names=["country", "gender", "education"], + ) + expected = Series([1, 1, 1, 2, 1], index=index, name="count") + tm.assert_series_equal(result, expected) + + +@pytest.fixture +def education_df(): + return DataFrame( + { + "gender": ["male", "male", "female", "male", "female", "male"], + "education": ["low", "medium", "high", "low", "high", "low"], + "country": ["US", "FR", "US", "FR", "FR", "FR"], + } + ) + + +def test_axis(education_df): + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + gp = education_df.groupby("country", axis=1) + with pytest.raises(NotImplementedError, match="axis"): + gp.value_counts() + + +def test_bad_subset(education_df): + gp = education_df.groupby("country") + with pytest.raises(ValueError, match="subset"): + gp.value_counts(subset=["country"]) + + +def test_basic(education_df, request): + # gh43564 + if Version(np.__version__) >= Version("1.25"): + request.applymarker( + pytest.mark.xfail( + reason=( + "pandas default unstable sorting of duplicates" + "issue with numpy>=1.25 with AVX instructions" + ), + strict=False, + ) + ) + result = education_df.groupby("country")[["gender", "education"]].value_counts( + normalize=True + ) + expected = Series( + data=[0.5, 0.25, 0.25, 0.5, 0.5], + index=MultiIndex.from_tuples( + [ + ("FR", "male", "low"), + ("FR", "female", "high"), + ("FR", "male", "medium"), + ("US", "female", "high"), + ("US", "male", "low"), + ], + names=["country", "gender", "education"], + ), + name="proportion", + ) + tm.assert_series_equal(result, expected) + + +def _frame_value_counts(df, keys, normalize, sort, ascending): + return df[keys].value_counts(normalize=normalize, sort=sort, ascending=ascending) + + +@pytest.mark.parametrize("groupby", ["column", "array", "function"]) +@pytest.mark.parametrize("normalize, name", [(True, "proportion"), (False, "count")]) +@pytest.mark.parametrize( + "sort, ascending", + [ + (False, None), + (True, True), + (True, False), + ], +) +@pytest.mark.parametrize("as_index", [True, False]) +@pytest.mark.parametrize("frame", [True, False]) +def test_against_frame_and_seriesgroupby( + education_df, + groupby, + normalize, + name, + sort, + ascending, + as_index, + frame, + request, + using_infer_string, +): + # test all parameters: + # - Use column, array or function as by= parameter + # - Whether or not to normalize + # - Whether or not to sort and how + # - Whether or not to use the groupby as an index + # - 3-way compare against: + # - apply with :meth:`~DataFrame.value_counts` + # - `~SeriesGroupBy.value_counts` + if Version(np.__version__) >= Version("1.25") and frame and sort and normalize: + request.applymarker( + pytest.mark.xfail( + reason=( + "pandas default unstable sorting of duplicates" + "issue with numpy>=1.25 with AVX instructions" + ), + strict=False, + ) + ) + by = { + "column": "country", + "array": education_df["country"].values, + "function": lambda x: education_df["country"][x] == "US", + }[groupby] + + gp = education_df.groupby(by=by, as_index=as_index) + result = gp[["gender", "education"]].value_counts( + normalize=normalize, sort=sort, ascending=ascending + ) + if frame: + # compare against apply with DataFrame value_counts + warn = FutureWarning if groupby == "column" else None + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(warn, match=msg): + expected = gp.apply( + _frame_value_counts, ["gender", "education"], normalize, sort, ascending + ) + + if as_index: + tm.assert_series_equal(result, expected) + else: + name = "proportion" if normalize else "count" + expected = expected.reset_index().rename({0: name}, axis=1) + if groupby == "column": + expected = expected.rename({"level_0": "country"}, axis=1) + expected["country"] = np.where(expected["country"], "US", "FR") + elif groupby == "function": + expected["level_0"] = expected["level_0"] == 1 + else: + expected["level_0"] = np.where(expected["level_0"], "US", "FR") + tm.assert_frame_equal(result, expected) + else: + # compare against SeriesGroupBy value_counts + education_df["both"] = education_df["gender"] + "-" + education_df["education"] + expected = gp["both"].value_counts( + normalize=normalize, sort=sort, ascending=ascending + ) + expected.name = name + if as_index: + index_frame = expected.index.to_frame(index=False) + index_frame["gender"] = index_frame["both"].str.split("-").str.get(0) + index_frame["education"] = index_frame["both"].str.split("-").str.get(1) + del index_frame["both"] + index_frame2 = index_frame.rename({0: None}, axis=1) + expected.index = MultiIndex.from_frame(index_frame2) + + if index_frame2.columns.isna()[0]: + # with using_infer_string, the columns in index_frame as string + # dtype, which makes the rename({0: None}) above use np.nan + # instead of None, so we need to set None more explicitly. + expected.index.names = [None] + expected.index.names[1:] + tm.assert_series_equal(result, expected) + else: + expected.insert(1, "gender", expected["both"].str.split("-").str.get(0)) + expected.insert(2, "education", expected["both"].str.split("-").str.get(1)) + if using_infer_string: + expected = expected.astype({"gender": "str", "education": "str"}) + del expected["both"] + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("normalize", [True, False]) +@pytest.mark.parametrize( + "sort, ascending, expected_rows, expected_count, expected_group_size", + [ + (False, None, [0, 1, 2, 3, 4], [1, 1, 1, 2, 1], [1, 3, 1, 3, 1]), + (True, False, [3, 0, 1, 2, 4], [2, 1, 1, 1, 1], [3, 1, 3, 1, 1]), + (True, True, [0, 1, 2, 4, 3], [1, 1, 1, 1, 2], [1, 3, 1, 1, 3]), + ], +) +def test_compound( + education_df, + normalize, + sort, + ascending, + expected_rows, + expected_count, + expected_group_size, + any_string_dtype, + using_infer_string, +): + dtype = any_string_dtype + education_df = education_df.astype(dtype) + education_df.columns = education_df.columns.astype(dtype) + # Multiple groupby keys and as_index=False + gp = education_df.groupby(["country", "gender"], as_index=False, sort=False) + result = gp["education"].value_counts( + normalize=normalize, sort=sort, ascending=ascending + ) + expected = DataFrame() + for column in ["country", "gender", "education"]: + expected[column] = [education_df[column][row] for row in expected_rows] + expected = expected.astype(dtype) + expected.columns = expected.columns.astype(dtype) + if normalize: + expected["proportion"] = expected_count + expected["proportion"] /= expected_group_size + if dtype == "string[pyarrow]": + # TODO(nullable) also string[python] should return nullable dtypes + expected["proportion"] = expected["proportion"].convert_dtypes() + else: + expected["count"] = expected_count + if dtype == "string[pyarrow]": + expected["count"] = expected["count"].convert_dtypes() + if using_infer_string and dtype == object: + expected = expected.astype( + {"country": "str", "gender": "str", "education": "str"} + ) + + tm.assert_frame_equal(result, expected) + + +@pytest.fixture +def animals_df(): + return DataFrame( + {"key": [1, 1, 1, 1], "num_legs": [2, 4, 4, 6], "num_wings": [2, 0, 0, 0]}, + index=["falcon", "dog", "cat", "ant"], + ) + + +@pytest.mark.parametrize( + "sort, ascending, normalize, name, expected_data, expected_index", + [ + (False, None, False, "count", [1, 2, 1], [(1, 1, 1), (2, 4, 6), (2, 0, 0)]), + (True, True, False, "count", [1, 1, 2], [(1, 1, 1), (2, 6, 4), (2, 0, 0)]), + (True, False, False, "count", [2, 1, 1], [(1, 1, 1), (4, 2, 6), (0, 2, 0)]), + ( + True, + False, + True, + "proportion", + [0.5, 0.25, 0.25], + [(1, 1, 1), (4, 2, 6), (0, 2, 0)], + ), + ], +) +def test_data_frame_value_counts( + animals_df, sort, ascending, normalize, name, expected_data, expected_index +): + # 3-way compare with :meth:`~DataFrame.value_counts` + # Tests from frame/methods/test_value_counts.py + result_frame = animals_df.value_counts( + sort=sort, ascending=ascending, normalize=normalize + ) + expected = Series( + data=expected_data, + index=MultiIndex.from_arrays( + expected_index, names=["key", "num_legs", "num_wings"] + ), + name=name, + ) + tm.assert_series_equal(result_frame, expected) + + result_frame_groupby = animals_df.groupby("key").value_counts( + sort=sort, ascending=ascending, normalize=normalize + ) + + tm.assert_series_equal(result_frame_groupby, expected) + + +@pytest.fixture +def nulls_df(): + n = np.nan + return DataFrame( + { + "A": [1, 1, n, 4, n, 6, 6, 6, 6], + "B": [1, 1, 3, n, n, 6, 6, 6, 6], + "C": [1, 2, 3, 4, 5, 6, n, 8, n], + "D": [1, 2, 3, 4, 5, 6, 7, n, n], + } + ) + + +@pytest.mark.parametrize( + "group_dropna, count_dropna, expected_rows, expected_values", + [ + ( + False, + False, + [0, 1, 3, 5, 7, 6, 8, 2, 4], + [0.5, 0.5, 1.0, 0.25, 0.25, 0.25, 0.25, 1.0, 1.0], + ), + (False, True, [0, 1, 3, 5, 2, 4], [0.5, 0.5, 1.0, 1.0, 1.0, 1.0]), + (True, False, [0, 1, 5, 7, 6, 8], [0.5, 0.5, 0.25, 0.25, 0.25, 0.25]), + (True, True, [0, 1, 5], [0.5, 0.5, 1.0]), + ], +) +def test_dropna_combinations( + nulls_df, group_dropna, count_dropna, expected_rows, expected_values, request +): + if Version(np.__version__) >= Version("1.25") and not group_dropna: + request.applymarker( + pytest.mark.xfail( + reason=( + "pandas default unstable sorting of duplicates" + "issue with numpy>=1.25 with AVX instructions" + ), + strict=False, + ) + ) + gp = nulls_df.groupby(["A", "B"], dropna=group_dropna) + result = gp.value_counts(normalize=True, sort=True, dropna=count_dropna) + columns = DataFrame() + for column in nulls_df.columns: + columns[column] = [nulls_df[column][row] for row in expected_rows] + index = MultiIndex.from_frame(columns) + expected = Series(data=expected_values, index=index, name="proportion") + tm.assert_series_equal(result, expected) + + +@pytest.fixture +def names_with_nulls_df(nulls_fixture): + return DataFrame( + { + "key": [1, 1, 1, 1], + "first_name": ["John", "Anne", "John", "Beth"], + "middle_name": ["Smith", nulls_fixture, nulls_fixture, "Louise"], + }, + ) + + +@pytest.mark.parametrize( + "dropna, expected_data, expected_index", + [ + ( + True, + [1, 1], + MultiIndex.from_arrays( + [(1, 1), ("Beth", "John"), ("Louise", "Smith")], + names=["key", "first_name", "middle_name"], + ), + ), + ( + False, + [1, 1, 1, 1], + MultiIndex( + levels=[ + Index([1]), + Index(["Anne", "Beth", "John"]), + Index(["Louise", "Smith", np.nan]), + ], + codes=[[0, 0, 0, 0], [0, 1, 2, 2], [2, 0, 1, 2]], + names=["key", "first_name", "middle_name"], + ), + ), + ], +) +@pytest.mark.parametrize("normalize, name", [(False, "count"), (True, "proportion")]) +def test_data_frame_value_counts_dropna( + names_with_nulls_df, dropna, normalize, name, expected_data, expected_index +): + # GH 41334 + # 3-way compare with :meth:`~DataFrame.value_counts` + # Tests with nulls from frame/methods/test_value_counts.py + result_frame = names_with_nulls_df.value_counts(dropna=dropna, normalize=normalize) + expected = Series( + data=expected_data, + index=expected_index, + name=name, + ) + if normalize: + expected /= float(len(expected_data)) + + tm.assert_series_equal(result_frame, expected) + + result_frame_groupby = names_with_nulls_df.groupby("key").value_counts( + dropna=dropna, normalize=normalize + ) + + tm.assert_series_equal(result_frame_groupby, expected) + + +@pytest.mark.parametrize("as_index", [False, True]) +@pytest.mark.parametrize("observed", [False, True]) +@pytest.mark.parametrize( + "normalize, name, expected_data", + [ + ( + False, + "count", + np.array([2, 1, 1, 0, 0, 0, 1, 1, 0, 0, 0, 0], dtype=np.int64), + ), + ( + True, + "proportion", + np.array([0.5, 0.25, 0.25, 0.0, 0.0, 0.0, 0.5, 0.5, 0.0, 0.0, 0.0, 0.0]), + ), + ], +) +def test_categorical_single_grouper_with_only_observed_categories( + education_df, as_index, observed, normalize, name, expected_data, request +): + # Test single categorical grouper with only observed grouping categories + # when non-groupers are also categorical + if Version(np.__version__) >= Version("1.25"): + request.applymarker( + pytest.mark.xfail( + reason=( + "pandas default unstable sorting of duplicates" + "issue with numpy>=1.25 with AVX instructions" + ), + strict=False, + ) + ) + + gp = education_df.astype("category").groupby( + "country", as_index=as_index, observed=observed + ) + result = gp.value_counts(normalize=normalize) + + expected_index = MultiIndex.from_tuples( + [ + ("FR", "male", "low"), + ("FR", "female", "high"), + ("FR", "male", "medium"), + ("FR", "female", "low"), + ("FR", "female", "medium"), + ("FR", "male", "high"), + ("US", "female", "high"), + ("US", "male", "low"), + ("US", "female", "low"), + ("US", "female", "medium"), + ("US", "male", "high"), + ("US", "male", "medium"), + ], + names=["country", "gender", "education"], + ) + + expected_series = Series( + data=expected_data, + index=expected_index, + name=name, + ) + for i in range(3): + expected_series.index = expected_series.index.set_levels( + CategoricalIndex(expected_series.index.levels[i]), level=i + ) + + if as_index: + tm.assert_series_equal(result, expected_series) + else: + expected = expected_series.reset_index( + name="proportion" if normalize else "count" + ) + tm.assert_frame_equal(result, expected) + + +def assert_categorical_single_grouper( + education_df, as_index, observed, expected_index, normalize, name, expected_data +): + # Test single categorical grouper when non-groupers are also categorical + education_df = education_df.copy().astype("category") + + # Add non-observed grouping categories + education_df["country"] = education_df["country"].cat.add_categories(["ASIA"]) + + gp = education_df.groupby("country", as_index=as_index, observed=observed) + result = gp.value_counts(normalize=normalize) + + expected_series = Series( + data=expected_data, + index=MultiIndex.from_tuples( + expected_index, + names=["country", "gender", "education"], + ), + name=name, + ) + for i in range(3): + index_level = CategoricalIndex(expected_series.index.levels[i]) + if i == 0: + index_level = index_level.set_categories( + education_df["country"].cat.categories + ) + expected_series.index = expected_series.index.set_levels(index_level, level=i) + + if as_index: + tm.assert_series_equal(result, expected_series) + else: + expected = expected_series.reset_index(name=name) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("as_index", [True, False]) +@pytest.mark.parametrize( + "normalize, name, expected_data", + [ + ( + False, + "count", + np.array([2, 1, 1, 0, 0, 0, 1, 1, 0, 0, 0, 0], dtype=np.int64), + ), + ( + True, + "proportion", + np.array([0.5, 0.25, 0.25, 0.0, 0.0, 0.0, 0.5, 0.5, 0.0, 0.0, 0.0, 0.0]), + ), + ], +) +def test_categorical_single_grouper_observed_true( + education_df, as_index, normalize, name, expected_data, request +): + # GH#46357 + + if Version(np.__version__) >= Version("1.25"): + request.applymarker( + pytest.mark.xfail( + reason=( + "pandas default unstable sorting of duplicates" + "issue with numpy>=1.25 with AVX instructions" + ), + strict=False, + ) + ) + + expected_index = [ + ("FR", "male", "low"), + ("FR", "female", "high"), + ("FR", "male", "medium"), + ("FR", "female", "low"), + ("FR", "female", "medium"), + ("FR", "male", "high"), + ("US", "female", "high"), + ("US", "male", "low"), + ("US", "female", "low"), + ("US", "female", "medium"), + ("US", "male", "high"), + ("US", "male", "medium"), + ] + + assert_categorical_single_grouper( + education_df=education_df, + as_index=as_index, + observed=True, + expected_index=expected_index, + normalize=normalize, + name=name, + expected_data=expected_data, + ) + + +@pytest.mark.parametrize("as_index", [True, False]) +@pytest.mark.parametrize( + "normalize, name, expected_data", + [ + ( + False, + "count", + np.array( + [2, 1, 1, 0, 0, 0, 1, 1, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0], dtype=np.int64 + ), + ), + ( + True, + "proportion", + np.array( + [ + 0.5, + 0.25, + 0.25, + 0.0, + 0.0, + 0.0, + 0.5, + 0.5, + 0.0, + 0.0, + 0.0, + 0.0, + 0.0, + 0.0, + 0.0, + 0.0, + 0.0, + 0.0, + ] + ), + ), + ], +) +def test_categorical_single_grouper_observed_false( + education_df, as_index, normalize, name, expected_data, request +): + # GH#46357 + + if Version(np.__version__) >= Version("1.25"): + request.applymarker( + pytest.mark.xfail( + reason=( + "pandas default unstable sorting of duplicates" + "issue with numpy>=1.25 with AVX instructions" + ), + strict=False, + ) + ) + + expected_index = [ + ("FR", "male", "low"), + ("FR", "female", "high"), + ("FR", "male", "medium"), + ("FR", "female", "low"), + ("FR", "female", "medium"), + ("FR", "male", "high"), + ("US", "female", "high"), + ("US", "male", "low"), + ("US", "female", "low"), + ("US", "female", "medium"), + ("US", "male", "high"), + ("US", "male", "medium"), + ("ASIA", "female", "high"), + ("ASIA", "female", "low"), + ("ASIA", "female", "medium"), + ("ASIA", "male", "high"), + ("ASIA", "male", "low"), + ("ASIA", "male", "medium"), + ] + + assert_categorical_single_grouper( + education_df=education_df, + as_index=as_index, + observed=False, + expected_index=expected_index, + normalize=normalize, + name=name, + expected_data=expected_data, + ) + + +@pytest.mark.parametrize("as_index", [True, False]) +@pytest.mark.parametrize( + "observed, expected_index", + [ + ( + False, + [ + ("FR", "high", "female"), + ("FR", "high", "male"), + ("FR", "low", "male"), + ("FR", "low", "female"), + ("FR", "medium", "male"), + ("FR", "medium", "female"), + ("US", "high", "female"), + ("US", "high", "male"), + ("US", "low", "male"), + ("US", "low", "female"), + ("US", "medium", "female"), + ("US", "medium", "male"), + ], + ), + ( + True, + [ + ("FR", "high", "female"), + ("FR", "low", "male"), + ("FR", "medium", "male"), + ("US", "high", "female"), + ("US", "low", "male"), + ], + ), + ], +) +@pytest.mark.parametrize( + "normalize, name, expected_data", + [ + ( + False, + "count", + np.array([1, 0, 2, 0, 1, 0, 1, 0, 1, 0, 0, 0], dtype=np.int64), + ), + ( + True, + "proportion", + # NaN values corresponds to non-observed groups + np.array([1.0, 0.0, 1.0, 0.0, 1.0, 0.0, 1.0, 0.0, 1.0, 0.0, 0.0, 0.0]), + ), + ], +) +def test_categorical_multiple_groupers( + education_df, as_index, observed, expected_index, normalize, name, expected_data +): + # GH#46357 + + # Test multiple categorical groupers when non-groupers are non-categorical + education_df = education_df.copy() + education_df["country"] = education_df["country"].astype("category") + education_df["education"] = education_df["education"].astype("category") + + gp = education_df.groupby( + ["country", "education"], as_index=as_index, observed=observed + ) + result = gp.value_counts(normalize=normalize) + + expected_series = Series( + data=expected_data[expected_data > 0.0] if observed else expected_data, + index=MultiIndex.from_tuples( + expected_index, + names=["country", "education", "gender"], + ), + name=name, + ) + for i in range(2): + expected_series.index = expected_series.index.set_levels( + CategoricalIndex(expected_series.index.levels[i]), level=i + ) + + if as_index: + tm.assert_series_equal(result, expected_series) + else: + expected = expected_series.reset_index( + name="proportion" if normalize else "count" + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("as_index", [False, True]) +@pytest.mark.parametrize("observed", [False, True]) +@pytest.mark.parametrize( + "normalize, name, expected_data", + [ + ( + False, + "count", + np.array([2, 1, 1, 0, 0, 0, 1, 1, 0, 0, 0, 0], dtype=np.int64), + ), + ( + True, + "proportion", + # NaN values corresponds to non-observed groups + np.array([0.5, 0.25, 0.25, 0.0, 0.0, 0.0, 0.5, 0.5, 0.0, 0.0, 0.0, 0.0]), + ), + ], +) +def test_categorical_non_groupers( + education_df, as_index, observed, normalize, name, expected_data, request +): + # GH#46357 Test non-observed categories are included in the result, + # regardless of `observed` + + if Version(np.__version__) >= Version("1.25"): + request.applymarker( + pytest.mark.xfail( + reason=( + "pandas default unstable sorting of duplicates" + "issue with numpy>=1.25 with AVX instructions" + ), + strict=False, + ) + ) + + education_df = education_df.copy() + education_df["gender"] = education_df["gender"].astype("category") + education_df["education"] = education_df["education"].astype("category") + + gp = education_df.groupby("country", as_index=as_index, observed=observed) + result = gp.value_counts(normalize=normalize) + + expected_index = [ + ("FR", "male", "low"), + ("FR", "female", "high"), + ("FR", "male", "medium"), + ("FR", "female", "low"), + ("FR", "female", "medium"), + ("FR", "male", "high"), + ("US", "female", "high"), + ("US", "male", "low"), + ("US", "female", "low"), + ("US", "female", "medium"), + ("US", "male", "high"), + ("US", "male", "medium"), + ] + expected_series = Series( + data=expected_data, + index=MultiIndex.from_tuples( + expected_index, + names=["country", "gender", "education"], + ), + name=name, + ) + for i in range(1, 3): + expected_series.index = expected_series.index.set_levels( + CategoricalIndex(expected_series.index.levels[i]), level=i + ) + + if as_index: + tm.assert_series_equal(result, expected_series) + else: + expected = expected_series.reset_index( + name="proportion" if normalize else "count" + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "normalize, expected_label, expected_values", + [ + (False, "count", [1, 1, 1]), + (True, "proportion", [0.5, 0.5, 1.0]), + ], +) +def test_mixed_groupings(normalize, expected_label, expected_values): + # Test multiple groupings + df = DataFrame({"A": [1, 2, 1], "B": [1, 2, 3]}) + gp = df.groupby([[4, 5, 4], "A", lambda i: 7 if i == 1 else 8], as_index=False) + result = gp.value_counts(sort=True, normalize=normalize) + expected = DataFrame( + { + "level_0": np.array([4, 4, 5], dtype=int), + "A": [1, 1, 2], + "level_2": [8, 8, 7], + "B": [1, 3, 2], + expected_label: expected_values, + } + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "test, columns, expected_names", + [ + ("repeat", list("abbde"), ["a", None, "d", "b", "b", "e"]), + ("level", list("abcd") + ["level_1"], ["a", None, "d", "b", "c", "level_1"]), + ], +) +@pytest.mark.parametrize("as_index", [False, True]) +def test_column_label_duplicates(test, columns, expected_names, as_index): + # GH 44992 + # Test for duplicate input column labels and generated duplicate labels + df = DataFrame([[1, 3, 5, 7, 9], [2, 4, 6, 8, 10]], columns=columns) + expected_data = [(1, 0, 7, 3, 5, 9), (2, 1, 8, 4, 6, 10)] + keys = ["a", np.array([0, 1], dtype=np.int64), "d"] + result = df.groupby(keys, as_index=as_index).value_counts() + if as_index: + expected = Series( + data=(1, 1), + index=MultiIndex.from_tuples( + expected_data, + names=expected_names, + ), + name="count", + ) + tm.assert_series_equal(result, expected) + else: + expected_data = [list(row) + [1] for row in expected_data] + expected_columns = list(expected_names) + expected_columns[1] = "level_1" + expected_columns.append("count") + expected = DataFrame(expected_data, columns=expected_columns) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "normalize, expected_label", + [ + (False, "count"), + (True, "proportion"), + ], +) +def test_result_label_duplicates(normalize, expected_label): + # Test for result column label duplicating an input column label + gb = DataFrame([[1, 2, 3]], columns=["a", "b", expected_label]).groupby( + "a", as_index=False + ) + msg = f"Column label '{expected_label}' is duplicate of result column" + with pytest.raises(ValueError, match=msg): + gb.value_counts(normalize=normalize) + + +def test_ambiguous_grouping(): + # Test that groupby is not confused by groupings length equal to row count + df = DataFrame({"a": [1, 1]}) + gb = df.groupby(np.array([1, 1], dtype=np.int64)) + result = gb.value_counts() + expected = Series( + [2], index=MultiIndex.from_tuples([[1, 1]], names=[None, "a"]), name="count" + ) + tm.assert_series_equal(result, expected) + + +def test_subset_overlaps_gb_key_raises(): + # GH 46383 + df = DataFrame({"c1": ["a", "b", "c"], "c2": ["x", "y", "y"]}, index=[0, 1, 1]) + msg = "Keys {'c1'} in subset cannot be in the groupby column keys." + with pytest.raises(ValueError, match=msg): + df.groupby("c1").value_counts(subset=["c1"]) + + +def test_subset_doesnt_exist_in_frame(): + # GH 46383 + df = DataFrame({"c1": ["a", "b", "c"], "c2": ["x", "y", "y"]}, index=[0, 1, 1]) + msg = "Keys {'c3'} in subset do not exist in the DataFrame." + with pytest.raises(ValueError, match=msg): + df.groupby("c1").value_counts(subset=["c3"]) + + +def test_subset(): + # GH 46383 + df = DataFrame({"c1": ["a", "b", "c"], "c2": ["x", "y", "y"]}, index=[0, 1, 1]) + result = df.groupby(level=0).value_counts(subset=["c2"]) + expected = Series( + [1, 2], + index=MultiIndex.from_arrays([[0, 1], ["x", "y"]], names=[None, "c2"]), + name="count", + ) + tm.assert_series_equal(result, expected) + + +def test_subset_duplicate_columns(): + # GH 46383 + df = DataFrame( + [["a", "x", "x"], ["b", "y", "y"], ["b", "y", "y"]], + index=[0, 1, 1], + columns=["c1", "c2", "c2"], + ) + result = df.groupby(level=0).value_counts(subset=["c2"]) + expected = Series( + [1, 2], + index=MultiIndex.from_arrays( + [[0, 1], ["x", "y"], ["x", "y"]], names=[None, "c2", "c2"] + ), + name="count", + ) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("utc", [True, False]) +def test_value_counts_time_grouper(utc, unit): + # GH#50486 + df = DataFrame( + { + "Timestamp": [ + 1565083561, + 1565083561 + 86400, + 1565083561 + 86500, + 1565083561 + 86400 * 2, + 1565083561 + 86400 * 3, + 1565083561 + 86500 * 3, + 1565083561 + 86400 * 4, + ], + "Food": ["apple", "apple", "banana", "banana", "orange", "orange", "pear"], + } + ).drop([3]) + + df["Datetime"] = to_datetime(df["Timestamp"], utc=utc, unit="s").dt.as_unit(unit) + gb = df.groupby(Grouper(freq="1D", key="Datetime")) + result = gb.value_counts() + dates = to_datetime( + ["2019-08-06", "2019-08-07", "2019-08-09", "2019-08-10"], utc=utc + ).as_unit(unit) + timestamps = df["Timestamp"].unique() + index = MultiIndex( + levels=[dates, timestamps, ["apple", "banana", "orange", "pear"]], + codes=[[0, 1, 1, 2, 2, 3], range(6), [0, 0, 1, 2, 2, 3]], + names=["Datetime", "Timestamp", "Food"], + ) + expected = Series(1, index=index, name="count") + tm.assert_series_equal(result, expected) + + +def test_value_counts_integer_columns(): + # GH#55627 + df = DataFrame({1: ["a", "a", "a"], 2: ["a", "a", "d"], 3: ["a", "b", "c"]}) + gp = df.groupby([1, 2], as_index=False, sort=False) + result = gp[3].value_counts() + expected = DataFrame( + {1: ["a", "a", "a"], 2: ["a", "a", "d"], 3: ["a", "b", "c"], "count": 1} + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("vc_sort", [True, False]) +@pytest.mark.parametrize("normalize", [True, False]) +def test_value_counts_sort(sort, vc_sort, normalize): + # GH#55951 + df = DataFrame({"a": [2, 1, 1, 1], 0: [3, 4, 3, 3]}) + gb = df.groupby("a", sort=sort) + result = gb.value_counts(sort=vc_sort, normalize=normalize) + + if normalize: + values = [2 / 3, 1 / 3, 1.0] + else: + values = [2, 1, 1] + index = MultiIndex( + levels=[[1, 2], [3, 4]], codes=[[0, 0, 1], [0, 1, 0]], names=["a", 0] + ) + expected = Series(values, index=index, name="proportion" if normalize else "count") + if sort and vc_sort: + taker = [0, 1, 2] + elif sort and not vc_sort: + taker = [0, 1, 2] + elif not sort and vc_sort: + taker = [0, 2, 1] + else: + taker = [2, 1, 0] + expected = expected.take(taker) + + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("vc_sort", [True, False]) +@pytest.mark.parametrize("normalize", [True, False]) +def test_value_counts_sort_categorical(sort, vc_sort, normalize): + # GH#55951 + df = DataFrame({"a": [2, 1, 1, 1], 0: [3, 4, 3, 3]}, dtype="category") + gb = df.groupby("a", sort=sort, observed=True) + result = gb.value_counts(sort=vc_sort, normalize=normalize) + + if normalize: + values = [2 / 3, 1 / 3, 1.0, 0.0] + else: + values = [2, 1, 1, 0] + name = "proportion" if normalize else "count" + expected = DataFrame( + { + "a": Categorical([1, 1, 2, 2]), + 0: Categorical([3, 4, 3, 4]), + name: values, + } + ).set_index(["a", 0])[name] + if sort and vc_sort: + taker = [0, 1, 2, 3] + elif sort and not vc_sort: + taker = [0, 1, 2, 3] + elif not sort and vc_sort: + taker = [0, 2, 1, 3] + else: + taker = [2, 3, 0, 1] + expected = expected.take(taker) + + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_all_methods.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_all_methods.py new file mode 100644 index 0000000000000000000000000000000000000000..ad35bec70f668f1df9808d1aebec2b1405424bc1 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_all_methods.py @@ -0,0 +1,83 @@ +""" +Tests that apply to all groupby operation methods. + +The only tests that should appear here are those that use the `groupby_func` fixture. +Even if it does use that fixture, prefer a more specific test file if it available +such as: + + - test_categorical + - test_groupby_dropna + - test_groupby_subclass + - test_raises +""" + +import pytest + +import pandas as pd +from pandas import DataFrame +import pandas._testing as tm +from pandas.tests.groupby import get_groupby_method_args + + +def test_multiindex_group_all_columns_when_empty(groupby_func): + # GH 32464 + df = DataFrame({"a": [], "b": [], "c": []}).set_index(["a", "b", "c"]) + gb = df.groupby(["a", "b", "c"], group_keys=False) + method = getattr(gb, groupby_func) + args = get_groupby_method_args(groupby_func, df) + + warn = FutureWarning if groupby_func == "fillna" else None + warn_msg = "DataFrameGroupBy.fillna is deprecated" + with tm.assert_produces_warning(warn, match=warn_msg): + result = method(*args).index + expected = df.index + tm.assert_index_equal(result, expected) + + +def test_duplicate_columns(request, groupby_func, as_index): + # GH#50806 + if groupby_func == "corrwith": + msg = "GH#50845 - corrwith fails when there are duplicate columns" + request.applymarker(pytest.mark.xfail(reason=msg)) + df = DataFrame([[1, 3, 6], [1, 4, 7], [2, 5, 8]], columns=list("abb")) + args = get_groupby_method_args(groupby_func, df) + gb = df.groupby("a", as_index=as_index) + warn = FutureWarning if groupby_func == "fillna" else None + warn_msg = "DataFrameGroupBy.fillna is deprecated" + with tm.assert_produces_warning(warn, match=warn_msg): + result = getattr(gb, groupby_func)(*args) + + expected_df = df.set_axis(["a", "b", "c"], axis=1) + expected_args = get_groupby_method_args(groupby_func, expected_df) + expected_gb = expected_df.groupby("a", as_index=as_index) + warn = FutureWarning if groupby_func == "fillna" else None + warn_msg = "DataFrameGroupBy.fillna is deprecated" + with tm.assert_produces_warning(warn, match=warn_msg): + expected = getattr(expected_gb, groupby_func)(*expected_args) + if groupby_func not in ("size", "ngroup", "cumcount"): + expected = expected.rename(columns={"c": "b"}) + tm.assert_equal(result, expected) + + +@pytest.mark.parametrize( + "idx", + [ + pd.Index(["a", "a"], name="foo"), + pd.MultiIndex.from_tuples((("a", "a"), ("a", "a")), names=["foo", "bar"]), + ], +) +def test_dup_labels_output_shape(groupby_func, idx): + if groupby_func in {"size", "ngroup", "cumcount"}: + pytest.skip(f"Not applicable for {groupby_func}") + + df = DataFrame([[1, 1]], columns=idx) + grp_by = df.groupby([0]) + + args = get_groupby_method_args(groupby_func, df) + warn = FutureWarning if groupby_func == "fillna" else None + warn_msg = "DataFrameGroupBy.fillna is deprecated" + with tm.assert_produces_warning(warn, match=warn_msg): + result = getattr(grp_by, groupby_func)(*args) + + assert result.shape == (1, 2) + tm.assert_index_equal(result.columns, idx) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_api.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_api.py new file mode 100644 index 0000000000000000000000000000000000000000..5c5982954de2f889d3f23d30273cb1a10089315f --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_api.py @@ -0,0 +1,265 @@ +""" +Tests of the groupby API, including internal consistency and with other pandas objects. + +Tests in this file should only check the existence, names, and arguments of groupby +methods. It should not test the results of any groupby operation. +""" + +import inspect + +import pytest + +from pandas import ( + DataFrame, + Series, +) +from pandas.core.groupby.base import ( + groupby_other_methods, + reduction_kernels, + transformation_kernels, +) +from pandas.core.groupby.generic import ( + DataFrameGroupBy, + SeriesGroupBy, +) + + +def test_tab_completion(multiindex_dataframe_random_data): + grp = multiindex_dataframe_random_data.groupby(level="second") + results = {v for v in dir(grp) if not v.startswith("_")} + expected = { + "A", + "B", + "C", + "agg", + "aggregate", + "apply", + "boxplot", + "filter", + "first", + "get_group", + "groups", + "hist", + "indices", + "last", + "max", + "mean", + "median", + "min", + "ngroups", + "nth", + "ohlc", + "plot", + "prod", + "size", + "std", + "sum", + "transform", + "var", + "sem", + "count", + "nunique", + "head", + "describe", + "cummax", + "quantile", + "rank", + "cumprod", + "tail", + "resample", + "cummin", + "fillna", + "cumsum", + "cumcount", + "ngroup", + "all", + "shift", + "skew", + "take", + "pct_change", + "any", + "corr", + "corrwith", + "cov", + "dtypes", + "ndim", + "diff", + "idxmax", + "idxmin", + "ffill", + "bfill", + "rolling", + "expanding", + "pipe", + "sample", + "ewm", + "value_counts", + } + assert results == expected + + +def test_all_methods_categorized(multiindex_dataframe_random_data): + grp = multiindex_dataframe_random_data.groupby( + multiindex_dataframe_random_data.iloc[:, 0] + ) + names = {_ for _ in dir(grp) if not _.startswith("_")} - set( + multiindex_dataframe_random_data.columns + ) + new_names = set(names) + new_names -= reduction_kernels + new_names -= transformation_kernels + new_names -= groupby_other_methods + + assert not reduction_kernels & transformation_kernels + assert not reduction_kernels & groupby_other_methods + assert not transformation_kernels & groupby_other_methods + + # new public method? + if new_names: + msg = f""" +There are uncategorized methods defined on the Grouper class: +{new_names}. + +Was a new method recently added? + +Every public method On Grouper must appear in exactly one the +following three lists defined in pandas.core.groupby.base: +- `reduction_kernels` +- `transformation_kernels` +- `groupby_other_methods` +see the comments in pandas/core/groupby/base.py for guidance on +how to fix this test. + """ + raise AssertionError(msg) + + # removed a public method? + all_categorized = reduction_kernels | transformation_kernels | groupby_other_methods + if names != all_categorized: + msg = f""" +Some methods which are supposed to be on the Grouper class +are missing: +{all_categorized - names}. + +They're still defined in one of the lists that live in pandas/core/groupby/base.py. +If you removed a method, you should update them +""" + raise AssertionError(msg) + + +def test_frame_consistency(groupby_func): + # GH#48028 + if groupby_func in ("first", "last"): + msg = "first and last are entirely different between frame and groupby" + pytest.skip(reason=msg) + + if groupby_func in ("cumcount", "ngroup"): + assert not hasattr(DataFrame, groupby_func) + return + + frame_method = getattr(DataFrame, groupby_func) + gb_method = getattr(DataFrameGroupBy, groupby_func) + result = set(inspect.signature(gb_method).parameters) + if groupby_func == "size": + # "size" is a method on GroupBy but property on DataFrame: + expected = {"self"} + else: + expected = set(inspect.signature(frame_method).parameters) + + # Exclude certain arguments from result and expected depending on the operation + # Some of these may be purposeful inconsistencies between the APIs + exclude_expected, exclude_result = set(), set() + if groupby_func in ("any", "all"): + exclude_expected = {"kwargs", "bool_only", "axis"} + elif groupby_func in ("count",): + exclude_expected = {"numeric_only", "axis"} + elif groupby_func in ("nunique",): + exclude_expected = {"axis"} + elif groupby_func in ("max", "min"): + exclude_expected = {"axis", "kwargs", "skipna"} + exclude_result = {"min_count", "engine", "engine_kwargs"} + elif groupby_func in ("mean", "std", "sum", "var"): + exclude_expected = {"axis", "kwargs", "skipna"} + exclude_result = {"engine", "engine_kwargs"} + elif groupby_func in ("median", "prod", "sem"): + exclude_expected = {"axis", "kwargs", "skipna"} + elif groupby_func in ("backfill", "bfill", "ffill", "pad"): + exclude_expected = {"downcast", "inplace", "axis", "limit_area"} + elif groupby_func in ("cummax", "cummin"): + exclude_expected = {"skipna", "args"} + exclude_result = {"numeric_only"} + elif groupby_func in ("cumprod", "cumsum"): + exclude_expected = {"skipna"} + elif groupby_func in ("pct_change",): + exclude_expected = {"kwargs"} + exclude_result = {"axis"} + elif groupby_func in ("rank",): + exclude_expected = {"numeric_only"} + elif groupby_func in ("quantile",): + exclude_expected = {"method", "axis"} + + # Ensure excluded arguments are actually in the signatures + assert result & exclude_result == exclude_result + assert expected & exclude_expected == exclude_expected + + result -= exclude_result + expected -= exclude_expected + assert result == expected + + +def test_series_consistency(request, groupby_func): + # GH#48028 + if groupby_func in ("first", "last"): + pytest.skip("first and last are entirely different between Series and groupby") + + if groupby_func in ("cumcount", "corrwith", "ngroup"): + assert not hasattr(Series, groupby_func) + return + + series_method = getattr(Series, groupby_func) + gb_method = getattr(SeriesGroupBy, groupby_func) + result = set(inspect.signature(gb_method).parameters) + if groupby_func == "size": + # "size" is a method on GroupBy but property on Series + expected = {"self"} + else: + expected = set(inspect.signature(series_method).parameters) + + # Exclude certain arguments from result and expected depending on the operation + # Some of these may be purposeful inconsistencies between the APIs + exclude_expected, exclude_result = set(), set() + if groupby_func in ("any", "all"): + exclude_expected = {"kwargs", "bool_only", "axis"} + elif groupby_func in ("diff",): + exclude_result = {"axis"} + elif groupby_func in ("max", "min"): + exclude_expected = {"axis", "kwargs", "skipna"} + exclude_result = {"min_count", "engine", "engine_kwargs"} + elif groupby_func in ("mean", "std", "sum", "var"): + exclude_expected = {"axis", "kwargs", "skipna"} + exclude_result = {"engine", "engine_kwargs"} + elif groupby_func in ("median", "prod", "sem"): + exclude_expected = {"axis", "kwargs", "skipna"} + elif groupby_func in ("backfill", "bfill", "ffill", "pad"): + exclude_expected = {"downcast", "inplace", "axis", "limit_area"} + elif groupby_func in ("cummax", "cummin"): + exclude_expected = {"skipna", "args"} + exclude_result = {"numeric_only"} + elif groupby_func in ("cumprod", "cumsum"): + exclude_expected = {"skipna"} + elif groupby_func in ("pct_change",): + exclude_expected = {"kwargs"} + exclude_result = {"axis"} + elif groupby_func in ("rank",): + exclude_expected = {"numeric_only"} + elif groupby_func in ("idxmin", "idxmax"): + exclude_expected = {"args", "kwargs"} + elif groupby_func in ("quantile",): + exclude_result = {"numeric_only"} + + # Ensure excluded arguments are actually in the signatures + assert result & exclude_result == exclude_result + assert expected & exclude_expected == exclude_expected + + result -= exclude_result + expected -= exclude_expected + assert result == expected diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_apply.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_apply.py new file mode 100644 index 0000000000000000000000000000000000000000..8ee38a688a1a0e54976b6dcbdbba4a2c2696b535 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_apply.py @@ -0,0 +1,1605 @@ +from datetime import ( + date, + datetime, +) + +import numpy as np +import pytest + +from pandas._config import using_string_dtype + +import pandas as pd +from pandas import ( + DataFrame, + Index, + MultiIndex, + Series, + bdate_range, +) +import pandas._testing as tm +from pandas.tests.groupby import get_groupby_method_args + + +def test_apply_func_that_appends_group_to_list_without_copy(): + # GH: 17718 + + df = DataFrame(1, index=list(range(10)) * 10, columns=[0]).reset_index() + groups = [] + + def store(group): + groups.append(group) + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + df.groupby("index").apply(store) + expected_value = DataFrame( + {"index": [0] * 10, 0: [1] * 10}, index=pd.RangeIndex(0, 100, 10) + ) + + tm.assert_frame_equal(groups[0], expected_value) + + +def test_apply_index_date(using_infer_string): + # GH 5788 + ts = [ + "2011-05-16 00:00", + "2011-05-16 01:00", + "2011-05-16 02:00", + "2011-05-16 03:00", + "2011-05-17 02:00", + "2011-05-17 03:00", + "2011-05-17 04:00", + "2011-05-17 05:00", + "2011-05-18 02:00", + "2011-05-18 03:00", + "2011-05-18 04:00", + "2011-05-18 05:00", + ] + df = DataFrame( + { + "value": [ + 1.40893, + 1.40760, + 1.40750, + 1.40649, + 1.40893, + 1.40760, + 1.40750, + 1.40649, + 1.40893, + 1.40760, + 1.40750, + 1.40649, + ], + }, + index=Index(pd.to_datetime(ts), name="date_time"), + ) + expected = df.groupby(df.index.date).idxmax() + result = df.groupby(df.index.date).apply(lambda x: x.idxmax()) + tm.assert_frame_equal(result, expected) + + +def test_apply_index_date_object(): + # GH 5789 + # don't auto coerce dates + ts = [ + "2011-05-16 00:00", + "2011-05-16 01:00", + "2011-05-16 02:00", + "2011-05-16 03:00", + "2011-05-17 02:00", + "2011-05-17 03:00", + "2011-05-17 04:00", + "2011-05-17 05:00", + "2011-05-18 02:00", + "2011-05-18 03:00", + "2011-05-18 04:00", + "2011-05-18 05:00", + ] + df = DataFrame([row.split() for row in ts], columns=["date", "time"]) + df["value"] = [ + 1.40893, + 1.40760, + 1.40750, + 1.40649, + 1.40893, + 1.40760, + 1.40750, + 1.40649, + 1.40893, + 1.40760, + 1.40750, + 1.40649, + ] + exp_idx = Index(["2011-05-16", "2011-05-17", "2011-05-18"], name="date") + expected = Series(["00:00", "02:00", "02:00"], index=exp_idx) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("date", group_keys=False).apply( + lambda x: x["time"][x["value"].idxmax()] + ) + tm.assert_series_equal(result, expected) + + +def test_apply_trivial(using_infer_string): + # GH 20066 + # trivial apply: ignore input and return a constant dataframe. + df = DataFrame( + {"key": ["a", "a", "b", "b", "a"], "data": [1.0, 2.0, 3.0, 4.0, 5.0]}, + columns=["key", "data"], + ) + dtype = "str" if using_infer_string else "object" + expected = pd.concat([df.iloc[1:], df.iloc[1:]], axis=1, keys=["float64", dtype]) + + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + gb = df.groupby([str(x) for x in df.dtypes], axis=1) + result = gb.apply(lambda x: df.iloc[1:]) + + tm.assert_frame_equal(result, expected) + + +def test_apply_trivial_fail(using_infer_string): + # GH 20066 + df = DataFrame( + {"key": ["a", "a", "b", "b", "a"], "data": [1.0, 2.0, 3.0, 4.0, 5.0]}, + columns=["key", "data"], + ) + dtype = "str" if using_infer_string else "object" + expected = pd.concat([df, df], axis=1, keys=["float64", dtype]) + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + gb = df.groupby([str(x) for x in df.dtypes], axis=1, group_keys=True) + result = gb.apply(lambda x: df) + + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "df, group_names", + [ + (DataFrame({"a": [1, 1, 1, 2, 3], "b": ["a", "a", "a", "b", "c"]}), [1, 2, 3]), + (DataFrame({"a": [0, 0, 1, 1], "b": [0, 1, 0, 1]}), [0, 1]), + (DataFrame({"a": [1]}), [1]), + (DataFrame({"a": [1, 1, 1, 2, 2, 1, 1, 2], "b": range(8)}), [1, 2]), + (DataFrame({"a": [1, 2, 3, 1, 2, 3], "two": [4, 5, 6, 7, 8, 9]}), [1, 2, 3]), + ( + DataFrame( + { + "a": list("aaabbbcccc"), + "B": [3, 4, 3, 6, 5, 2, 1, 9, 5, 4], + "C": [4, 0, 2, 2, 2, 7, 8, 6, 2, 8], + } + ), + ["a", "b", "c"], + ), + (DataFrame([[1, 2, 3], [2, 2, 3]], columns=["a", "b", "c"]), [1, 2]), + ], + ids=[ + "GH2936", + "GH7739 & GH10519", + "GH10519", + "GH2656", + "GH12155", + "GH20084", + "GH21417", + ], +) +def test_group_apply_once_per_group(df, group_names): + # GH2936, GH7739, GH10519, GH2656, GH12155, GH20084, GH21417 + + # This test should ensure that a function is only evaluated + # once per group. Previously the function has been evaluated twice + # on the first group to check if the Cython index slider is safe to use + # This test ensures that the side effect (append to list) is only triggered + # once per group + + names = [] + # cannot parameterize over the functions since they need external + # `names` to detect side effects + + def f_copy(group): + # this takes the fast apply path + names.append(group.name) + return group.copy() + + def f_nocopy(group): + # this takes the slow apply path + names.append(group.name) + return group + + def f_scalar(group): + # GH7739, GH2656 + names.append(group.name) + return 0 + + def f_none(group): + # GH10519, GH12155, GH21417 + names.append(group.name) + + def f_constant_df(group): + # GH2936, GH20084 + names.append(group.name) + return DataFrame({"a": [1], "b": [1]}) + + for func in [f_copy, f_nocopy, f_scalar, f_none, f_constant_df]: + del names[:] + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + df.groupby("a", group_keys=False).apply(func) + assert names == group_names + + +def test_group_apply_once_per_group2(capsys): + # GH: 31111 + # groupby-apply need to execute len(set(group_by_columns)) times + + expected = 2 # Number of times `apply` should call a function for the current test + + df = DataFrame( + { + "group_by_column": [0, 0, 0, 0, 1, 1, 1, 1], + "test_column": ["0", "2", "4", "6", "8", "10", "12", "14"], + }, + index=["0", "2", "4", "6", "8", "10", "12", "14"], + ) + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + df.groupby("group_by_column", group_keys=False).apply( + lambda df: print("function_called") + ) + + result = capsys.readouterr().out.count("function_called") + # If `groupby` behaves unexpectedly, this test will break + assert result == expected + + +def test_apply_fast_slow_identical(): + # GH 31613 + + df = DataFrame({"A": [0, 0, 1], "b": range(3)}) + + # For simple index structures we check for fast/slow apply using + # an identity check on in/output + def slow(group): + return group + + def fast(group): + return group.copy() + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + fast_df = df.groupby("A", group_keys=False).apply(fast) + with tm.assert_produces_warning(FutureWarning, match=msg): + slow_df = df.groupby("A", group_keys=False).apply(slow) + + tm.assert_frame_equal(fast_df, slow_df) + + +@pytest.mark.parametrize( + "func", + [ + lambda x: x, + lambda x: x[:], + lambda x: x.copy(deep=False), + lambda x: x.copy(deep=True), + ], +) +def test_groupby_apply_identity_maybecopy_index_identical(func): + # GH 14927 + # Whether the function returns a copy of the input data or not should not + # have an impact on the index structure of the result since this is not + # transparent to the user + + df = DataFrame({"g": [1, 2, 2, 2], "a": [1, 2, 3, 4], "b": [5, 6, 7, 8]}) + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("g", group_keys=False).apply(func) + tm.assert_frame_equal(result, df) + + +def test_apply_with_mixed_dtype(): + # GH3480, apply with mixed dtype on axis=1 breaks in 0.11 + df = DataFrame( + { + "foo1": np.random.default_rng(2).standard_normal(6), + "foo2": ["one", "two", "two", "three", "one", "two"], + } + ) + result = df.apply(lambda x: x, axis=1).dtypes + expected = df.dtypes + tm.assert_series_equal(result, expected) + + # GH 3610 incorrect dtype conversion with as_index=False + df = DataFrame({"c1": [1, 2, 6, 6, 8]}) + df["c2"] = df.c1 / 2.0 + result1 = df.groupby("c2").mean().reset_index().c2 + result2 = df.groupby("c2", as_index=False).mean().c2 + tm.assert_series_equal(result1, result2) + + +def test_groupby_as_index_apply(): + # GH #4648 and #3417 + df = DataFrame( + { + "item_id": ["b", "b", "a", "c", "a", "b"], + "user_id": [1, 2, 1, 1, 3, 1], + "time": range(6), + } + ) + + g_as = df.groupby("user_id", as_index=True) + g_not_as = df.groupby("user_id", as_index=False) + + res_as = g_as.head(2).index + res_not_as = g_not_as.head(2).index + exp = Index([0, 1, 2, 4]) + tm.assert_index_equal(res_as, exp) + tm.assert_index_equal(res_not_as, exp) + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + res_as_apply = g_as.apply(lambda x: x.head(2)).index + with tm.assert_produces_warning(FutureWarning, match=msg): + res_not_as_apply = g_not_as.apply(lambda x: x.head(2)).index + + # apply doesn't maintain the original ordering + # changed in GH5610 as the as_index=False returns a MI here + exp_not_as_apply = MultiIndex.from_tuples([(0, 0), (0, 2), (1, 1), (2, 4)]) + tp = [(1, 0), (1, 2), (2, 1), (3, 4)] + exp_as_apply = MultiIndex.from_tuples(tp, names=["user_id", None]) + + tm.assert_index_equal(res_as_apply, exp_as_apply) + tm.assert_index_equal(res_not_as_apply, exp_not_as_apply) + + ind = Index(list("abcde")) + df = DataFrame([[1, 2], [2, 3], [1, 4], [1, 5], [2, 6]], index=ind) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + res = df.groupby(0, as_index=False, group_keys=False).apply(lambda x: x).index + tm.assert_index_equal(res, ind) + + +def test_apply_concat_preserve_names(three_group): + grouped = three_group.groupby(["A", "B"]) + + def desc(group): + result = group.describe() + result.index.name = "stat" + return result + + def desc2(group): + result = group.describe() + result.index.name = "stat" + result = result[: len(group)] + # weirdo + return result + + def desc3(group): + result = group.describe() + + # names are different + result.index.name = f"stat_{len(group):d}" + + result = result[: len(group)] + # weirdo + return result + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = grouped.apply(desc) + assert result.index.names == ("A", "B", "stat") + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result2 = grouped.apply(desc2) + assert result2.index.names == ("A", "B", "stat") + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result3 = grouped.apply(desc3) + assert result3.index.names == ("A", "B", None) + + +def test_apply_series_to_frame(): + def f(piece): + with np.errstate(invalid="ignore"): + logged = np.log(piece) + return DataFrame( + {"value": piece, "demeaned": piece - piece.mean(), "logged": logged} + ) + + dr = bdate_range("1/1/2000", periods=100) + ts = Series(np.random.default_rng(2).standard_normal(100), index=dr) + + grouped = ts.groupby(lambda x: x.month, group_keys=False) + result = grouped.apply(f) + + assert isinstance(result, DataFrame) + assert not hasattr(result, "name") # GH49907 + tm.assert_index_equal(result.index, ts.index) + + +def test_apply_series_yield_constant(df): + result = df.groupby(["A", "B"])["C"].apply(len) + assert result.index.names[:2] == ("A", "B") + + +def test_apply_frame_yield_constant(df): + # GH13568 + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby(["A", "B"]).apply(len) + assert isinstance(result, Series) + assert result.name is None + + result = df.groupby(["A", "B"])[["C", "D"]].apply(len) + assert isinstance(result, Series) + assert result.name is None + + +def test_apply_frame_to_series(df): + grouped = df.groupby(["A", "B"]) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = grouped.apply(len) + expected = grouped.count()["C"] + tm.assert_index_equal(result.index, expected.index) + tm.assert_numpy_array_equal(result.values, expected.values) + + +def test_apply_frame_not_as_index_column_name(df): + # GH 35964 - path within _wrap_applied_output not hit by a test + grouped = df.groupby(["A", "B"], as_index=False) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = grouped.apply(len) + expected = grouped.count().rename(columns={"C": np.nan}).drop(columns="D") + # TODO(GH#34306): Use assert_frame_equal when column name is not np.nan + tm.assert_index_equal(result.index, expected.index) + tm.assert_numpy_array_equal(result.values, expected.values) + + +def test_apply_frame_concat_series(): + def trans(group): + return group.groupby("B")["C"].sum().sort_values().iloc[:2] + + def trans2(group): + grouped = group.groupby(df.reindex(group.index)["B"]) + return grouped.sum().sort_values().iloc[:2] + + df = DataFrame( + { + "A": np.random.default_rng(2).integers(0, 5, 1000), + "B": np.random.default_rng(2).integers(0, 5, 1000), + "C": np.random.default_rng(2).standard_normal(1000), + } + ) + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("A").apply(trans) + exp = df.groupby("A")["C"].apply(trans2) + tm.assert_series_equal(result, exp, check_names=False) + assert result.name == "C" + + +def test_apply_transform(ts): + grouped = ts.groupby(lambda x: x.month, group_keys=False) + result = grouped.apply(lambda x: x * 2) + expected = grouped.transform(lambda x: x * 2) + tm.assert_series_equal(result, expected) + + +def test_apply_multikey_corner(tsframe): + grouped = tsframe.groupby([lambda x: x.year, lambda x: x.month]) + + def f(group): + return group.sort_values("A")[-5:] + + result = grouped.apply(f) + for key, group in grouped: + tm.assert_frame_equal(result.loc[key], f(group)) + + +@pytest.mark.parametrize("group_keys", [True, False]) +def test_apply_chunk_view(group_keys): + # Low level tinkering could be unsafe, make sure not + df = DataFrame({"key": [1, 1, 1, 2, 2, 2, 3, 3, 3], "value": range(9)}) + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("key", group_keys=group_keys).apply(lambda x: x.iloc[:2]) + expected = df.take([0, 1, 3, 4, 6, 7]) + if group_keys: + expected.index = MultiIndex.from_arrays( + [[1, 1, 2, 2, 3, 3], expected.index], names=["key", None] + ) + + tm.assert_frame_equal(result, expected) + + +def test_apply_no_name_column_conflict(): + df = DataFrame( + { + "name": [1, 1, 1, 1, 1, 1, 2, 2, 2, 2], + "name2": [0, 0, 0, 1, 1, 1, 0, 0, 1, 1], + "value": range(9, -1, -1), + } + ) + + # it works! #2605 + grouped = df.groupby(["name", "name2"]) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + grouped.apply(lambda x: x.sort_values("value", inplace=True)) + + +def test_apply_typecast_fail(): + df = DataFrame( + { + "d": [1.0, 1.0, 1.0, 2.0, 2.0, 2.0], + "c": np.tile(["a", "b", "c"], 2), + "v": np.arange(1.0, 7.0), + } + ) + + def f(group): + v = group["v"] + group["v2"] = (v - v.min()) / (v.max() - v.min()) + return group + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("d", group_keys=False).apply(f) + + expected = df.copy() + expected["v2"] = np.tile([0.0, 0.5, 1], 2) + + tm.assert_frame_equal(result, expected) + + +def test_apply_multiindex_fail(): + index = MultiIndex.from_arrays([[0, 0, 0, 1, 1, 1], [1, 2, 3, 1, 2, 3]]) + df = DataFrame( + { + "d": [1.0, 1.0, 1.0, 2.0, 2.0, 2.0], + "c": np.tile(["a", "b", "c"], 2), + "v": np.arange(1.0, 7.0), + }, + index=index, + ) + + def f(group): + v = group["v"] + group["v2"] = (v - v.min()) / (v.max() - v.min()) + return group + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("d", group_keys=False).apply(f) + + expected = df.copy() + expected["v2"] = np.tile([0.0, 0.5, 1], 2) + + tm.assert_frame_equal(result, expected) + + +def test_apply_corner(tsframe): + result = tsframe.groupby(lambda x: x.year, group_keys=False).apply(lambda x: x * 2) + expected = tsframe * 2 + tm.assert_frame_equal(result, expected) + + +def test_apply_without_copy(): + # GH 5545 + # returning a non-copy in an applied function fails + + data = DataFrame( + { + "id_field": [100, 100, 200, 300], + "category": ["a", "b", "c", "c"], + "value": [1, 2, 3, 4], + } + ) + + def filt1(x): + if x.shape[0] == 1: + return x.copy() + else: + return x[x.category == "c"] + + def filt2(x): + if x.shape[0] == 1: + return x + else: + return x[x.category == "c"] + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = data.groupby("id_field").apply(filt1) + with tm.assert_produces_warning(FutureWarning, match=msg): + result = data.groupby("id_field").apply(filt2) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("test_series", [True, False]) +def test_apply_with_duplicated_non_sorted_axis(test_series): + # GH 30667 + df = DataFrame( + [["x", "p"], ["x", "p"], ["x", "o"]], columns=["X", "Y"], index=[1, 2, 2] + ) + if test_series: + ser = df.set_index("Y")["X"] + result = ser.groupby(level=0, group_keys=False).apply(lambda x: x) + + # not expecting the order to remain the same for duplicated axis + result = result.sort_index() + expected = ser.sort_index() + tm.assert_series_equal(result, expected) + else: + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("Y", group_keys=False).apply(lambda x: x) + + # not expecting the order to remain the same for duplicated axis + result = result.sort_values("Y") + expected = df.sort_values("Y") + tm.assert_frame_equal(result, expected) + + +def test_apply_reindex_values(): + # GH: 26209 + # reindexing from a single column of a groupby object with duplicate indices caused + # a ValueError (cannot reindex from duplicate axis) in 0.24.2, the problem was + # solved in #30679 + values = [1, 2, 3, 4] + indices = [1, 1, 2, 2] + df = DataFrame({"group": ["Group1", "Group2"] * 2, "value": values}, index=indices) + expected = Series(values, index=indices, name="value") + + def reindex_helper(x): + return x.reindex(np.arange(x.index.min(), x.index.max() + 1)) + + # the following group by raised a ValueError + result = df.groupby("group", group_keys=False).value.apply(reindex_helper) + tm.assert_series_equal(expected, result) + + +def test_apply_corner_cases(): + # #535, can't use sliding iterator + + N = 1000 + labels = np.random.default_rng(2).integers(0, 100, size=N) + df = DataFrame( + { + "key": labels, + "value1": np.random.default_rng(2).standard_normal(N), + "value2": ["foo", "bar", "baz", "qux"] * (N // 4), + } + ) + + grouped = df.groupby("key", group_keys=False) + + def f(g): + g["value3"] = g["value1"] * 2 + return g + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = grouped.apply(f) + assert "value3" in result + + +def test_apply_numeric_coercion_when_datetime(): + # In the past, group-by/apply operations have been over-eager + # in converting dtypes to numeric, in the presence of datetime + # columns. Various GH issues were filed, the reproductions + # for which are here. + + # GH 15670 + df = DataFrame( + {"Number": [1, 2], "Date": ["2017-03-02"] * 2, "Str": ["foo", "inf"]} + ) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = df.groupby(["Number"]).apply(lambda x: x.iloc[0]) + df.Date = pd.to_datetime(df.Date) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby(["Number"]).apply(lambda x: x.iloc[0]) + tm.assert_series_equal(result["Str"], expected["Str"]) + + # GH 15421 + df = DataFrame( + {"A": [10, 20, 30], "B": ["foo", "3", "4"], "T": [pd.Timestamp("12:31:22")] * 3} + ) + + def get_B(g): + return g.iloc[0][["B"]] + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("A").apply(get_B)["B"] + expected = df.B + expected.index = df.A + tm.assert_series_equal(result, expected) + + # GH 14423 + def predictions(tool): + out = Series(index=["p1", "p2", "useTime"], dtype=object) + if "step1" in list(tool.State): + out["p1"] = str(tool[tool.State == "step1"].Machine.values[0]) + if "step2" in list(tool.State): + out["p2"] = str(tool[tool.State == "step2"].Machine.values[0]) + out["useTime"] = str(tool[tool.State == "step2"].oTime.values[0]) + return out + + df1 = DataFrame( + { + "Key": ["B", "B", "A", "A"], + "State": ["step1", "step2", "step1", "step2"], + "oTime": ["", "2016-09-19 05:24:33", "", "2016-09-19 23:59:04"], + "Machine": ["23", "36L", "36R", "36R"], + } + ) + df2 = df1.copy() + df2.oTime = pd.to_datetime(df2.oTime) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = df1.groupby("Key").apply(predictions).p1 + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df2.groupby("Key").apply(predictions).p1 + tm.assert_series_equal(expected, result) + + +def test_apply_aggregating_timedelta_and_datetime(): + # Regression test for GH 15562 + # The following groupby caused ValueErrors and IndexErrors pre 0.20.0 + + df = DataFrame( + { + "clientid": ["A", "B", "C"], + "datetime": [np.datetime64("2017-02-01 00:00:00")] * 3, + } + ) + df["time_delta_zero"] = df.datetime - df.datetime + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("clientid").apply( + lambda ddf: Series( + {"clientid_age": ddf.time_delta_zero.min(), "date": ddf.datetime.min()} + ) + ) + expected = DataFrame( + { + "clientid": ["A", "B", "C"], + "clientid_age": [np.timedelta64(0, "D")] * 3, + "date": [np.datetime64("2017-02-01 00:00:00")] * 3, + } + ).set_index("clientid") + + tm.assert_frame_equal(result, expected) + + +def test_apply_groupby_datetimeindex(): + # GH 26182 + # groupby apply failed on dataframe with DatetimeIndex + + data = [["A", 10], ["B", 20], ["B", 30], ["C", 40], ["C", 50]] + df = DataFrame( + data, columns=["Name", "Value"], index=pd.date_range("2020-09-01", "2020-09-05") + ) + + result = df.groupby("Name").sum() + + expected = DataFrame({"Name": ["A", "B", "C"], "Value": [10, 50, 90]}) + expected.set_index("Name", inplace=True) + + tm.assert_frame_equal(result, expected) + + +def test_time_field_bug(): + # Test a fix for the following error related to GH issue 11324 When + # non-key fields in a group-by dataframe contained time-based fields + # that were not returned by the apply function, an exception would be + # raised. + + df = DataFrame({"a": 1, "b": [datetime.now() for nn in range(10)]}) + + def func_with_no_date(batch): + return Series({"c": 2}) + + def func_with_date(batch): + return Series({"b": datetime(2015, 1, 1), "c": 2}) + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + dfg_no_conversion = df.groupby(by=["a"]).apply(func_with_no_date) + dfg_no_conversion_expected = DataFrame({"c": 2}, index=[1]) + dfg_no_conversion_expected.index.name = "a" + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + dfg_conversion = df.groupby(by=["a"]).apply(func_with_date) + dfg_conversion_expected = DataFrame( + {"b": pd.Timestamp(2015, 1, 1).as_unit("ns"), "c": 2}, index=[1] + ) + dfg_conversion_expected.index.name = "a" + + tm.assert_frame_equal(dfg_no_conversion, dfg_no_conversion_expected) + tm.assert_frame_equal(dfg_conversion, dfg_conversion_expected) + + +def test_gb_apply_list_of_unequal_len_arrays(): + # GH1738 + df = DataFrame( + { + "group1": ["a", "a", "a", "b", "b", "b", "a", "a", "a", "b", "b", "b"], + "group2": ["c", "c", "d", "d", "d", "e", "c", "c", "d", "d", "d", "e"], + "weight": [1.1, 2, 3, 4, 5, 6, 2, 4, 6, 8, 1, 2], + "value": [7.1, 8, 9, 10, 11, 12, 8, 7, 6, 5, 4, 3], + } + ) + df = df.set_index(["group1", "group2"]) + df_grouped = df.groupby(level=["group1", "group2"], sort=True) + + def noddy(value, weight): + out = np.array(value * weight).repeat(3) + return out + + # the kernel function returns arrays of unequal length + # pandas sniffs the first one, sees it's an array and not + # a list, and assumed the rest are of equal length + # and so tries a vstack + + # don't die + df_grouped.apply(lambda x: noddy(x.value, x.weight)) + + +def test_groupby_apply_all_none(): + # Tests to make sure no errors if apply function returns all None + # values. Issue 9684. + test_df = DataFrame({"groups": [0, 0, 1, 1], "random_vars": [8, 7, 4, 5]}) + + def test_func(x): + pass + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = test_df.groupby("groups").apply(test_func) + expected = DataFrame() + tm.assert_frame_equal(result, expected) + + +def test_groupby_apply_none_first(): + # GH 12824. Tests if apply returns None first. + test_df1 = DataFrame({"groups": [1, 1, 1, 2], "vars": [0, 1, 2, 3]}) + test_df2 = DataFrame({"groups": [1, 2, 2, 2], "vars": [0, 1, 2, 3]}) + + def test_func(x): + if x.shape[0] < 2: + return None + return x.iloc[[0, -1]] + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result1 = test_df1.groupby("groups").apply(test_func) + with tm.assert_produces_warning(FutureWarning, match=msg): + result2 = test_df2.groupby("groups").apply(test_func) + index1 = MultiIndex.from_arrays([[1, 1], [0, 2]], names=["groups", None]) + index2 = MultiIndex.from_arrays([[2, 2], [1, 3]], names=["groups", None]) + expected1 = DataFrame({"groups": [1, 1], "vars": [0, 2]}, index=index1) + expected2 = DataFrame({"groups": [2, 2], "vars": [1, 3]}, index=index2) + tm.assert_frame_equal(result1, expected1) + tm.assert_frame_equal(result2, expected2) + + +def test_groupby_apply_return_empty_chunk(): + # GH 22221: apply filter which returns some empty groups + df = DataFrame({"value": [0, 1], "group": ["filled", "empty"]}) + groups = df.groupby("group") + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = groups.apply(lambda group: group[group.value != 1]["value"]) + expected = Series( + [0], + name="value", + index=MultiIndex.from_product( + [["empty", "filled"], [0]], names=["group", None] + ).drop("empty"), + ) + tm.assert_series_equal(result, expected) + + +def test_apply_with_mixed_types(): + # gh-20949 + df = DataFrame({"A": "a a b".split(), "B": [1, 2, 3], "C": [4, 6, 5]}) + g = df.groupby("A", group_keys=False) + + result = g.transform(lambda x: x / x.sum()) + expected = DataFrame({"B": [1 / 3.0, 2 / 3.0, 1], "C": [0.4, 0.6, 1.0]}) + tm.assert_frame_equal(result, expected) + + result = g.apply(lambda x: x / x.sum()) + tm.assert_frame_equal(result, expected) + + +def test_func_returns_object(): + # GH 28652 + df = DataFrame({"a": [1, 2]}, index=Index([1, 2])) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("a").apply(lambda g: g.index) + expected = Series([Index([1]), Index([2])], index=Index([1, 2], name="a")) + + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "group_column_dtlike", + [datetime.today(), datetime.today().date(), datetime.today().time()], +) +def test_apply_datetime_issue(group_column_dtlike): + # GH-28247 + # groupby-apply throws an error if one of the columns in the DataFrame + # is a datetime object and the column labels are different from + # standard int values in range(len(num_columns)) + + df = DataFrame({"a": ["foo"], "b": [group_column_dtlike]}) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("a").apply(lambda x: Series(["spam"], index=[42])) + + expected = DataFrame(["spam"], Index(["foo"], dtype="str", name="a"), columns=[42]) + tm.assert_frame_equal(result, expected) + + +def test_apply_series_return_dataframe_groups(): + # GH 10078 + tdf = DataFrame( + { + "day": { + 0: pd.Timestamp("2015-02-24 00:00:00"), + 1: pd.Timestamp("2015-02-24 00:00:00"), + 2: pd.Timestamp("2015-02-24 00:00:00"), + 3: pd.Timestamp("2015-02-24 00:00:00"), + 4: pd.Timestamp("2015-02-24 00:00:00"), + }, + "userAgent": { + 0: "some UA string", + 1: "some UA string", + 2: "some UA string", + 3: "another UA string", + 4: "some UA string", + }, + "userId": { + 0: "17661101", + 1: "17661101", + 2: "17661101", + 3: "17661101", + 4: "17661101", + }, + } + ) + + def most_common_values(df): + return Series({c: s.value_counts().index[0] for c, s in df.items()}) + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = tdf.groupby("day").apply(most_common_values)["userId"] + expected = Series( + ["17661101"], index=pd.DatetimeIndex(["2015-02-24"], name="day"), name="userId" + ) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("category", [False, True]) +def test_apply_multi_level_name(category): + # https://github.com/pandas-dev/pandas/issues/31068 + b = [1, 2] * 5 + if category: + b = pd.Categorical(b, categories=[1, 2, 3]) + expected_index = pd.CategoricalIndex([1, 2, 3], categories=[1, 2, 3], name="B") + expected_values = [20, 25, 0] + else: + expected_index = Index([1, 2], name="B") + expected_values = [20, 25] + expected = DataFrame( + {"C": expected_values, "D": expected_values}, index=expected_index + ) + + df = DataFrame( + {"A": np.arange(10), "B": b, "C": list(range(10)), "D": list(range(10))} + ).set_index(["A", "B"]) + result = df.groupby("B", observed=False).apply(lambda x: x.sum()) + tm.assert_frame_equal(result, expected) + assert df.index.names == ["A", "B"] + + +def test_groupby_apply_datetime_result_dtypes(using_infer_string): + # GH 14849 + data = DataFrame.from_records( + [ + (pd.Timestamp(2016, 1, 1), "red", "dark", 1, "8"), + (pd.Timestamp(2015, 1, 1), "green", "stormy", 2, "9"), + (pd.Timestamp(2014, 1, 1), "blue", "bright", 3, "10"), + (pd.Timestamp(2013, 1, 1), "blue", "calm", 4, "potato"), + ], + columns=["observation", "color", "mood", "intensity", "score"], + ) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = data.groupby("color").apply(lambda g: g.iloc[0]).dtypes + dtype = pd.StringDtype(na_value=np.nan) if using_infer_string else object + expected = Series( + [np.dtype("datetime64[ns]"), dtype, dtype, np.int64, dtype], + index=["observation", "color", "mood", "intensity", "score"], + ) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "index", + [ + pd.CategoricalIndex(list("abc")), + pd.interval_range(0, 3), + pd.period_range("2020", periods=3, freq="D"), + MultiIndex.from_tuples([("a", 0), ("a", 1), ("b", 0)]), + ], +) +def test_apply_index_has_complex_internals(index): + # GH 31248 + df = DataFrame({"group": [1, 1, 2], "value": [0, 1, 0]}, index=index) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("group", group_keys=False).apply(lambda x: x) + tm.assert_frame_equal(result, df) + + +@pytest.mark.parametrize( + "function, expected_values", + [ + (lambda x: x.index.to_list(), [[0, 1], [2, 3]]), + (lambda x: set(x.index.to_list()), [{0, 1}, {2, 3}]), + (lambda x: tuple(x.index.to_list()), [(0, 1), (2, 3)]), + ( + lambda x: dict(enumerate(x.index.to_list())), + [{0: 0, 1: 1}, {0: 2, 1: 3}], + ), + ( + lambda x: [{n: i} for (n, i) in enumerate(x.index.to_list())], + [[{0: 0}, {1: 1}], [{0: 2}, {1: 3}]], + ), + ], +) +def test_apply_function_returns_non_pandas_non_scalar(function, expected_values): + # GH 31441 + df = DataFrame(["A", "A", "B", "B"], columns=["groups"]) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("groups").apply(function) + expected = Series(expected_values, index=Index(["A", "B"], name="groups")) + tm.assert_series_equal(result, expected) + + +def test_apply_function_returns_numpy_array(): + # GH 31605 + def fct(group): + return group["B"].values.flatten() + + df = DataFrame({"A": ["a", "a", "b", "none"], "B": [1, 2, 3, np.nan]}) + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("A").apply(fct) + expected = Series( + [[1.0, 2.0], [3.0], [np.nan]], index=Index(["a", "b", "none"], name="A") + ) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("function", [lambda gr: gr.index, lambda gr: gr.index + 1 - 1]) +def test_apply_function_index_return(function): + # GH: 22541 + df = DataFrame([1, 2, 2, 2, 1, 2, 3, 1, 3, 1], columns=["id"]) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("id").apply(function) + expected = Series( + [Index([0, 4, 7, 9]), Index([1, 2, 3, 5]), Index([6, 8])], + index=Index([1, 2, 3], name="id"), + ) + tm.assert_series_equal(result, expected) + + +def test_apply_function_with_indexing_return_column(): + # GH#7002, GH#41480, GH#49256 + df = DataFrame( + { + "foo1": ["one", "two", "two", "three", "one", "two"], + "foo2": [1, 2, 4, 4, 5, 6], + } + ) + result = df.groupby("foo1", as_index=False).apply(lambda x: x.mean()) + expected = DataFrame( + { + "foo1": ["one", "three", "two"], + "foo2": [3.0, 4.0, 4.0], + } + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "udf", + [(lambda x: x.copy()), (lambda x: x.copy().rename(lambda y: y + 1))], +) +@pytest.mark.parametrize("group_keys", [True, False]) +def test_apply_result_type(group_keys, udf): + # https://github.com/pandas-dev/pandas/issues/34809 + # We'd like to control whether the group keys end up in the index + # regardless of whether the UDF happens to be a transform. + df = DataFrame({"A": ["a", "b"], "B": [1, 2]}) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + df_result = df.groupby("A", group_keys=group_keys).apply(udf) + series_result = df.B.groupby(df.A, group_keys=group_keys).apply(udf) + + if group_keys: + assert df_result.index.nlevels == 2 + assert series_result.index.nlevels == 2 + else: + assert df_result.index.nlevels == 1 + assert series_result.index.nlevels == 1 + + +def test_result_order_group_keys_false(): + # GH 34998 + # apply result order should not depend on whether index is the same or just equal + df = DataFrame({"A": [2, 1, 2], "B": [1, 2, 3]}) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("A", group_keys=False).apply(lambda x: x) + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = df.groupby("A", group_keys=False).apply(lambda x: x.copy()) + tm.assert_frame_equal(result, expected) + + +def test_apply_with_timezones_aware(): + # GH: 27212 + dates = ["2001-01-01"] * 2 + ["2001-01-02"] * 2 + ["2001-01-03"] * 2 + index_no_tz = pd.DatetimeIndex(dates) + index_tz = pd.DatetimeIndex(dates, tz="UTC") + df1 = DataFrame({"x": list(range(2)) * 3, "y": range(6), "t": index_no_tz}) + df2 = DataFrame({"x": list(range(2)) * 3, "y": range(6), "t": index_tz}) + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result1 = df1.groupby("x", group_keys=False).apply( + lambda df: df[["x", "y"]].copy() + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + result2 = df2.groupby("x", group_keys=False).apply( + lambda df: df[["x", "y"]].copy() + ) + + tm.assert_frame_equal(result1, result2) + + +def test_apply_is_unchanged_when_other_methods_are_called_first(reduction_func): + # GH #34656 + # GH #34271 + df = DataFrame( + { + "a": [99, 99, 99, 88, 88, 88], + "b": [1, 2, 3, 4, 5, 6], + "c": [10, 20, 30, 40, 50, 60], + } + ) + + expected = DataFrame( + {"b": [15, 6], "c": [150, 60]}, + index=Index([88, 99], name="a"), + ) + + # Check output when no other methods are called before .apply() + grp = df.groupby(by="a") + msg = "The behavior of DataFrame.sum with axis=None is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg, check_stacklevel=False): + result = grp.apply(sum, include_groups=False) + tm.assert_frame_equal(result, expected) + + # Check output when another method is called before .apply() + grp = df.groupby(by="a") + args = get_groupby_method_args(reduction_func, df) + _ = getattr(grp, reduction_func)(*args) + with tm.assert_produces_warning(FutureWarning, match=msg, check_stacklevel=False): + result = grp.apply(sum, include_groups=False) + tm.assert_frame_equal(result, expected) + + +def test_apply_with_date_in_multiindex_does_not_convert_to_timestamp(): + # GH 29617 + + df = DataFrame( + { + "A": ["a", "a", "a", "b"], + "B": [ + date(2020, 1, 10), + date(2020, 1, 10), + date(2020, 2, 10), + date(2020, 2, 10), + ], + "C": [1, 2, 3, 4], + }, + index=Index([100, 101, 102, 103], name="idx"), + ) + + grp = df.groupby(["A", "B"]) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = grp.apply(lambda x: x.head(1)) + + expected = df.iloc[[0, 2, 3]] + expected = expected.reset_index() + expected.index = MultiIndex.from_frame(expected[["A", "B", "idx"]]) + expected = expected.drop(columns="idx") + + tm.assert_frame_equal(result, expected) + for val in result.index.levels[1]: + assert type(val) is date + + +def test_apply_by_cols_equals_apply_by_rows_transposed(): + # GH 16646 + # Operating on the columns, or transposing and operating on the rows + # should give the same result. There was previously a bug where the + # by_rows operation would work fine, but by_cols would throw a ValueError + + df = DataFrame( + np.random.default_rng(2).random([6, 4]), + columns=MultiIndex.from_product([["A", "B"], [1, 2]]), + ) + + msg = "The 'axis' keyword in DataFrame.groupby is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + gb = df.T.groupby(axis=0, level=0) + by_rows = gb.apply(lambda x: x.droplevel(axis=0, level=0)) + + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + gb2 = df.groupby(axis=1, level=0) + by_cols = gb2.apply(lambda x: x.droplevel(axis=1, level=0)) + + tm.assert_frame_equal(by_cols, by_rows.T) + tm.assert_frame_equal(by_cols, df) + + +@pytest.mark.parametrize("dropna", [True, False]) +def test_apply_dropna_with_indexed_same(dropna): + # GH 38227 + # GH#43205 + df = DataFrame( + { + "col": [1, 2, 3, 4, 5], + "group": ["a", np.nan, np.nan, "b", "b"], + }, + index=list("xxyxz"), + ) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("group", dropna=dropna, group_keys=False).apply(lambda x: x) + expected = df.dropna() if dropna else df.iloc[[0, 3, 1, 2, 4]] + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "as_index, expected", + [ + pytest.param( + False, + DataFrame( + [[1, 1, 1], [2, 2, 1]], columns=Index(["a", "b", None], dtype=object) + ), + marks=pytest.mark.xfail(using_string_dtype(), reason="TODO(infer_string)"), + ), + [ + True, + Series( + [1, 1], index=MultiIndex.from_tuples([(1, 1), (2, 2)], names=["a", "b"]) + ), + ], + ], +) +def test_apply_as_index_constant_lambda(as_index, expected): + # GH 13217 + df = DataFrame({"a": [1, 1, 2, 2], "b": [1, 1, 2, 2], "c": [1, 1, 1, 1]}) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby(["a", "b"], as_index=as_index).apply(lambda x: 1) + tm.assert_equal(result, expected) + + +def test_sort_index_groups(): + # GH 20420 + df = DataFrame( + {"A": [1, 2, 3, 4, 5], "B": [6, 7, 8, 9, 0], "C": [1, 1, 1, 2, 2]}, + index=range(5), + ) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("C").apply(lambda x: x.A.sort_index()) + expected = Series( + range(1, 6), + index=MultiIndex.from_tuples( + [(1, 0), (1, 1), (1, 2), (2, 3), (2, 4)], names=["C", None] + ), + name="A", + ) + tm.assert_series_equal(result, expected) + + +def test_positional_slice_groups_datetimelike(): + # GH 21651 + expected = DataFrame( + { + "date": pd.date_range("2010-01-01", freq="12h", periods=5), + "vals": range(5), + "let": list("abcde"), + } + ) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = expected.groupby( + [expected.let, expected.date.dt.date], group_keys=False + ).apply(lambda x: x.iloc[0:]) + tm.assert_frame_equal(result, expected) + + +def test_groupby_apply_shape_cache_safety(): + # GH#42702 this fails if we cache_readonly Block.shape + df = DataFrame({"A": ["a", "a", "b"], "B": [1, 2, 3], "C": [4, 6, 5]}) + gb = df.groupby("A") + result = gb[["B", "C"]].apply(lambda x: x.astype(float).max() - x.min()) + + expected = DataFrame( + {"B": [1.0, 0.0], "C": [2.0, 0.0]}, index=Index(["a", "b"], name="A") + ) + tm.assert_frame_equal(result, expected) + + +def test_groupby_apply_to_series_name(): + # GH52444 + df = DataFrame.from_dict( + { + "a": ["a", "b", "a", "b"], + "b1": ["aa", "ac", "ac", "ad"], + "b2": ["aa", "aa", "aa", "ac"], + } + ) + grp = df.groupby("a")[["b1", "b2"]] + result = grp.apply(lambda x: x.unstack().value_counts()) + + expected_idx = MultiIndex.from_arrays( + arrays=[["a", "a", "b", "b", "b"], ["aa", "ac", "ac", "ad", "aa"]], + names=["a", None], + ) + expected = Series([3, 1, 2, 1, 1], index=expected_idx, name="count") + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("dropna", [True, False]) +def test_apply_na(dropna): + # GH#28984 + df = DataFrame( + {"grp": [1, 1, 2, 2], "y": [1, 0, 2, 5], "z": [1, 2, np.nan, np.nan]} + ) + dfgrp = df.groupby("grp", dropna=dropna) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = dfgrp.apply(lambda grp_df: grp_df.nlargest(1, "z")) + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = dfgrp.apply(lambda x: x.sort_values("z", ascending=False).head(1)) + tm.assert_frame_equal(result, expected) + + +def test_apply_empty_string_nan_coerce_bug(): + # GH#24903 + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = ( + DataFrame( + { + "a": [1, 1, 2, 2], + "b": ["", "", "", ""], + "c": pd.to_datetime([1, 2, 3, 4], unit="s"), + } + ) + .groupby(["a", "b"]) + .apply(lambda df: df.iloc[-1]) + ) + expected = DataFrame( + [[1, "", pd.to_datetime(2, unit="s")], [2, "", pd.to_datetime(4, unit="s")]], + columns=["a", "b", "c"], + index=MultiIndex.from_tuples([(1, ""), (2, "")], names=["a", "b"]), + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("index_values", [[1, 2, 3], [1.0, 2.0, 3.0]]) +def test_apply_index_key_error_bug(index_values): + # GH 44310 + result = DataFrame( + { + "a": ["aa", "a2", "a3"], + "b": [1, 2, 3], + }, + index=Index(index_values), + ) + expected = DataFrame( + { + "b_mean": [2.0, 3.0, 1.0], + }, + index=Index(["a2", "a3", "aa"], name="a"), + ) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = result.groupby("a").apply( + lambda df: Series([df["b"].mean()], index=["b_mean"]) + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "arg,idx", + [ + [ + [ + 1, + 2, + 3, + ], + [ + 0.1, + 0.3, + 0.2, + ], + ], + [ + [ + 1, + 2, + 3, + ], + [ + 0.1, + 0.2, + 0.3, + ], + ], + [ + [ + 1, + 4, + 3, + ], + [ + 0.1, + 0.4, + 0.2, + ], + ], + ], +) +def test_apply_nonmonotonic_float_index(arg, idx): + # GH 34455 + expected = DataFrame({"col": arg}, index=idx) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = expected.groupby("col", group_keys=False).apply(lambda x: x) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("args, kwargs", [([True], {}), ([], {"numeric_only": True})]) +def test_apply_str_with_args(df, args, kwargs): + # GH#46479 + gb = df.groupby("A") + result = gb.apply("sum", *args, **kwargs) + expected = gb.sum(numeric_only=True) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("name", ["some_name", None]) +def test_result_name_when_one_group(name): + # GH 46369 + ser = Series([1, 2], name=name) + result = ser.groupby(["a", "a"], group_keys=False).apply(lambda x: x) + expected = Series([1, 2], name=name) + + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "method, op", + [ + ("apply", lambda gb: gb.values[-1]), + ("apply", lambda gb: gb["b"].iloc[0]), + ("agg", "skew"), + ("agg", "prod"), + ("agg", "sum"), + ], +) +def test_empty_df(method, op): + # GH 47985 + empty_df = DataFrame({"a": [], "b": []}) + gb = empty_df.groupby("a", group_keys=True) + group = getattr(gb, "b") + + result = getattr(group, method)(op) + expected = Series( + [], name="b", dtype="float64", index=Index([], dtype="float64", name="a") + ) + + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("include_groups", [True, False]) +def test_include_groups(include_groups): + # GH#7155 + df = DataFrame({"a": [1, 1, 2], "b": [3, 4, 5]}) + gb = df.groupby("a") + warn = FutureWarning if include_groups else None + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(warn, match=msg): + result = gb.apply(lambda x: x.sum(), include_groups=include_groups) + expected = DataFrame({"a": [2, 2], "b": [7, 5]}, index=Index([1, 2], name="a")) + if not include_groups: + expected = expected[["b"]] + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("f", [max, min, sum]) +@pytest.mark.parametrize("keys", ["jim", ["jim", "joe"]]) # Single key # Multi-key +def test_builtins_apply(keys, f): + # see gh-8155 + rs = np.random.default_rng(2) + df = DataFrame(rs.integers(1, 7, (10, 2)), columns=["jim", "joe"]) + df["jolie"] = rs.standard_normal(10) + + gb = df.groupby(keys) + + fname = f.__name__ + + warn = None if f is not sum else FutureWarning + msg = "The behavior of DataFrame.sum with axis=None is deprecated" + with tm.assert_produces_warning( + warn, match=msg, check_stacklevel=False, raise_on_extra_warnings=False + ): + # Also warns on deprecation GH#53425 + result = gb.apply(f) + ngroups = len(df.drop_duplicates(subset=keys)) + + assert_msg = f"invalid frame shape: {result.shape} (expected ({ngroups}, 3))" + assert result.shape == (ngroups, 3), assert_msg + + npfunc = lambda x: getattr(np, fname)(x, axis=0) # numpy's equivalent function + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = gb.apply(npfunc) + tm.assert_frame_equal(result, expected) + + with tm.assert_produces_warning(FutureWarning, match=msg): + expected2 = gb.apply(lambda x: npfunc(x)) + tm.assert_frame_equal(result, expected2) + + if f != sum: + expected = gb.agg(fname).reset_index() + expected.set_index(keys, inplace=True, drop=False) + tm.assert_frame_equal(result, expected, check_dtype=False) + + tm.assert_series_equal(getattr(result, fname)(axis=0), getattr(df, fname)(axis=0)) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_apply_mutate.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_apply_mutate.py new file mode 100644 index 0000000000000000000000000000000000000000..130a29abf9443d5da56df80e3f3fba9169cf7100 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_apply_mutate.py @@ -0,0 +1,163 @@ +import numpy as np + +import pandas as pd +import pandas._testing as tm + + +def test_group_by_copy(): + # GH#44803 + df = pd.DataFrame( + { + "name": ["Alice", "Bob", "Carl"], + "age": [20, 21, 20], + } + ).set_index("name") + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + grp_by_same_value = df.groupby(["age"], group_keys=False).apply( + lambda group: group + ) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + grp_by_copy = df.groupby(["age"], group_keys=False).apply( + lambda group: group.copy() + ) + tm.assert_frame_equal(grp_by_same_value, grp_by_copy) + + +def test_mutate_groups(): + # GH3380 + + df = pd.DataFrame( + { + "cat1": ["a"] * 8 + ["b"] * 6, + "cat2": ["c"] * 2 + + ["d"] * 2 + + ["e"] * 2 + + ["f"] * 2 + + ["c"] * 2 + + ["d"] * 2 + + ["e"] * 2, + "cat3": [f"g{x}" for x in range(1, 15)], + "val": np.random.default_rng(2).integers(100, size=14), + } + ) + + def f_copy(x): + x = x.copy() + x["rank"] = x.val.rank(method="min") + return x.groupby("cat2")["rank"].min() + + def f_no_copy(x): + x["rank"] = x.val.rank(method="min") + return x.groupby("cat2")["rank"].min() + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + grpby_copy = df.groupby("cat1").apply(f_copy) + with tm.assert_produces_warning(FutureWarning, match=msg): + grpby_no_copy = df.groupby("cat1").apply(f_no_copy) + tm.assert_series_equal(grpby_copy, grpby_no_copy) + + +def test_no_mutate_but_looks_like(): + # GH 8467 + # first show's mutation indicator + # second does not, but should yield the same results + df = pd.DataFrame({"key": [1, 1, 1, 2, 2, 2, 3, 3, 3], "value": range(9)}) + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result1 = df.groupby("key", group_keys=True).apply(lambda x: x[:].key) + with tm.assert_produces_warning(FutureWarning, match=msg): + result2 = df.groupby("key", group_keys=True).apply(lambda x: x.key) + tm.assert_series_equal(result1, result2) + + +def test_apply_function_with_indexing(warn_copy_on_write): + # GH: 33058 + df = pd.DataFrame( + {"col1": ["A", "A", "A", "B", "B", "B"], "col2": [1, 2, 3, 4, 5, 6]} + ) + + def fn(x): + x.loc[x.index[-1], "col2"] = 0 + return x.col2 + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning( + FutureWarning, match=msg, raise_on_extra_warnings=not warn_copy_on_write + ): + result = df.groupby(["col1"], as_index=False).apply(fn) + expected = pd.Series( + [1, 2, 0, 4, 5, 0], + index=pd.MultiIndex.from_tuples( + [(0, 0), (0, 1), (0, 2), (1, 3), (1, 4), (1, 5)] + ), + name="col2", + ) + tm.assert_series_equal(result, expected) + + +def test_apply_mutate_columns_multiindex(): + # GH 12652 + df = pd.DataFrame( + { + ("C", "julian"): [1, 2, 3], + ("B", "geoffrey"): [1, 2, 3], + ("A", "julian"): [1, 2, 3], + ("B", "julian"): [1, 2, 3], + ("A", "geoffrey"): [1, 2, 3], + ("C", "geoffrey"): [1, 2, 3], + }, + columns=pd.MultiIndex.from_tuples( + [ + ("A", "julian"), + ("A", "geoffrey"), + ("B", "julian"), + ("B", "geoffrey"), + ("C", "julian"), + ("C", "geoffrey"), + ] + ), + ) + + def add_column(grouped): + name = grouped.columns[0][1] + grouped["sum", name] = grouped.sum(axis=1) + return grouped + + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + gb = df.groupby(level=1, axis=1) + result = gb.apply(add_column) + expected = pd.DataFrame( + [ + [1, 1, 1, 3, 1, 1, 1, 3], + [2, 2, 2, 6, 2, 2, 2, 6], + [ + 3, + 3, + 3, + 9, + 3, + 3, + 3, + 9, + ], + ], + columns=pd.MultiIndex.from_tuples( + [ + ("geoffrey", "A", "geoffrey"), + ("geoffrey", "B", "geoffrey"), + ("geoffrey", "C", "geoffrey"), + ("geoffrey", "sum", "geoffrey"), + ("julian", "A", "julian"), + ("julian", "B", "julian"), + ("julian", "C", "julian"), + ("julian", "sum", "julian"), + ] + ), + ) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_bin_groupby.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_bin_groupby.py new file mode 100644 index 0000000000000000000000000000000000000000..49b2e621b7adc97947ec9d6c376a9d0f10e672fb --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_bin_groupby.py @@ -0,0 +1,65 @@ +import numpy as np +import pytest + +from pandas._libs import lib +import pandas.util._test_decorators as td + +import pandas as pd +import pandas._testing as tm + + +def assert_block_lengths(x): + assert len(x) == len(x._mgr.blocks[0].mgr_locs) + return 0 + + +def cumsum_max(x): + x.cumsum().max() + return 0 + + +@pytest.mark.parametrize( + "func", + [ + cumsum_max, + pytest.param(assert_block_lengths, marks=td.skip_array_manager_invalid_test), + ], +) +def test_mgr_locs_updated(func): + # https://github.com/pandas-dev/pandas/issues/31802 + # Some operations may require creating new blocks, which requires + # valid mgr_locs + df = pd.DataFrame({"A": ["a", "a", "a"], "B": ["a", "b", "b"], "C": [1, 1, 1]}) + result = df.groupby(["A", "B"]).agg(func) + expected = pd.DataFrame( + {"C": [0, 0]}, + index=pd.MultiIndex.from_product([["a"], ["a", "b"]], names=["A", "B"]), + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "binner,closed,expected", + [ + ( + np.array([0, 3, 6, 9], dtype=np.int64), + "left", + np.array([2, 5, 6], dtype=np.int64), + ), + ( + np.array([0, 3, 6, 9], dtype=np.int64), + "right", + np.array([3, 6, 6], dtype=np.int64), + ), + (np.array([0, 3, 6], dtype=np.int64), "left", np.array([2, 5], dtype=np.int64)), + ( + np.array([0, 3, 6], dtype=np.int64), + "right", + np.array([3, 6], dtype=np.int64), + ), + ], +) +def test_generate_bins(binner, closed, expected): + values = np.array([1, 2, 3, 4, 5, 6], dtype=np.int64) + result = lib.generate_bins_dt64(values, binner, closed=closed) + tm.assert_numpy_array_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_categorical.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_categorical.py new file mode 100644 index 0000000000000000000000000000000000000000..9a442a9609b5684a6a13f2fd0184ef3444ca9288 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_categorical.py @@ -0,0 +1,2187 @@ +from datetime import datetime + +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + Categorical, + CategoricalIndex, + DataFrame, + Index, + MultiIndex, + Series, + qcut, +) +import pandas._testing as tm +from pandas.api.typing import SeriesGroupBy +from pandas.tests.groupby import get_groupby_method_args + + +def cartesian_product_for_groupers(result, args, names, fill_value=np.nan): + """Reindex to a cartesian production for the groupers, + preserving the nature (Categorical) of each grouper + """ + + def f(a): + if isinstance(a, (CategoricalIndex, Categorical)): + categories = a.categories + a = Categorical.from_codes( + np.arange(len(categories)), categories=categories, ordered=a.ordered + ) + return a + + index = MultiIndex.from_product(map(f, args), names=names) + if isinstance(fill_value, dict): + # fill_value is a dict mapping column names to fill values + # -> reindex column by column (reindex itself does not support this) + res = {} + for col in result.columns: + res[col] = result[col].reindex(index, fill_value=fill_value[col]) + return DataFrame(res, index=index).sort_index() + + return result.reindex(index, fill_value=fill_value).sort_index() + + +_results_for_groupbys_with_missing_categories = { + # This maps the builtin groupby functions to their expected outputs for + # missing categories when they are called on a categorical grouper with + # observed=False. Some functions are expected to return NaN, some zero. + # These expected values can be used across several tests (i.e. they are + # the same for SeriesGroupBy and DataFrameGroupBy) but they should only be + # hardcoded in one place. + "all": np.nan, + "any": np.nan, + "count": 0, + "corrwith": np.nan, + "first": np.nan, + "idxmax": np.nan, + "idxmin": np.nan, + "last": np.nan, + "max": np.nan, + "mean": np.nan, + "median": np.nan, + "min": np.nan, + "nth": np.nan, + "nunique": 0, + "prod": np.nan, + "quantile": np.nan, + "sem": np.nan, + "size": 0, + "skew": np.nan, + "std": np.nan, + "sum": 0, + "var": np.nan, +} + + +@pytest.mark.filterwarnings("ignore:invalid value encountered in cast:RuntimeWarning") +def test_apply_use_categorical_name(df): + cats = qcut(df.C, 4) + + def get_stats(group): + return { + "min": group.min(), + "max": group.max(), + "count": group.count(), + "mean": group.mean(), + } + + result = df.groupby(cats, observed=False).D.apply(get_stats) + assert result.index.names[0] == "C" + + +def test_basic(using_infer_string): # TODO: split this test + cats = Categorical( + ["a", "a", "a", "b", "b", "b", "c", "c", "c"], + categories=["a", "b", "c", "d"], + ordered=True, + ) + data = DataFrame({"a": [1, 1, 1, 2, 2, 2, 3, 4, 5], "b": cats}) + + exp_index = CategoricalIndex(list("abcd"), name="b", ordered=True) + expected = DataFrame({"a": [1, 2, 4, np.nan]}, index=exp_index) + result = data.groupby("b", observed=False).mean() + tm.assert_frame_equal(result, expected) + + cat1 = Categorical(["a", "a", "b", "b"], categories=["a", "b", "z"], ordered=True) + cat2 = Categorical(["c", "d", "c", "d"], categories=["c", "d", "y"], ordered=True) + df = DataFrame({"A": cat1, "B": cat2, "values": [1, 2, 3, 4]}) + + # single grouper + gb = df.groupby("A", observed=False) + exp_idx = CategoricalIndex(["a", "b", "z"], name="A", ordered=True) + expected = DataFrame({"values": Series([3, 7, 0], index=exp_idx)}) + result = gb.sum(numeric_only=True) + tm.assert_frame_equal(result, expected) + + # GH 8623 + x = DataFrame( + [[1, "John P. Doe"], [2, "Jane Dove"], [1, "John P. Doe"]], + columns=["person_id", "person_name"], + ) + x["person_name"] = Categorical(x.person_name) + + g = x.groupby(["person_id"], observed=False) + result = g.transform(lambda x: x) + tm.assert_frame_equal(result, x[["person_name"]]) + + result = x.drop_duplicates("person_name") + expected = x.iloc[[0, 1]] + tm.assert_frame_equal(result, expected) + + def f(x): + return x.drop_duplicates("person_name").iloc[0] + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = g.apply(f) + expected = x.iloc[[0, 1]].copy() + expected.index = Index([1, 2], name="person_id") + dtype = "str" if using_infer_string else object + expected["person_name"] = expected["person_name"].astype(dtype) + tm.assert_frame_equal(result, expected) + + # GH 9921 + # Monotonic + df = DataFrame({"a": [5, 15, 25]}) + c = pd.cut(df.a, bins=[0, 10, 20, 30, 40]) + + msg = "using SeriesGroupBy.sum" + with tm.assert_produces_warning(FutureWarning, match=msg): + # GH#53425 + result = df.a.groupby(c, observed=False).transform(sum) + tm.assert_series_equal(result, df["a"]) + + tm.assert_series_equal( + df.a.groupby(c, observed=False).transform(lambda xs: np.sum(xs)), df["a"] + ) + msg = "using DataFrameGroupBy.sum" + with tm.assert_produces_warning(FutureWarning, match=msg): + # GH#53425 + result = df.groupby(c, observed=False).transform(sum) + expected = df[["a"]] + tm.assert_frame_equal(result, expected) + + gbc = df.groupby(c, observed=False) + result = gbc.transform(lambda xs: np.max(xs, axis=0)) + tm.assert_frame_equal(result, df[["a"]]) + + result2 = gbc.transform(lambda xs: np.max(xs, axis=0)) + msg = "using DataFrameGroupBy.max" + with tm.assert_produces_warning(FutureWarning, match=msg): + # GH#53425 + result3 = gbc.transform(max) + result4 = gbc.transform(np.maximum.reduce) + result5 = gbc.transform(lambda xs: np.maximum.reduce(xs)) + tm.assert_frame_equal(result2, df[["a"]], check_dtype=False) + tm.assert_frame_equal(result3, df[["a"]], check_dtype=False) + tm.assert_frame_equal(result4, df[["a"]]) + tm.assert_frame_equal(result5, df[["a"]]) + + # Filter + tm.assert_series_equal(df.a.groupby(c, observed=False).filter(np.all), df["a"]) + tm.assert_frame_equal(df.groupby(c, observed=False).filter(np.all), df) + + # Non-monotonic + df = DataFrame({"a": [5, 15, 25, -5]}) + c = pd.cut(df.a, bins=[-10, 0, 10, 20, 30, 40]) + + msg = "using SeriesGroupBy.sum" + with tm.assert_produces_warning(FutureWarning, match=msg): + # GH#53425 + result = df.a.groupby(c, observed=False).transform(sum) + tm.assert_series_equal(result, df["a"]) + + tm.assert_series_equal( + df.a.groupby(c, observed=False).transform(lambda xs: np.sum(xs)), df["a"] + ) + msg = "using DataFrameGroupBy.sum" + with tm.assert_produces_warning(FutureWarning, match=msg): + # GH#53425 + result = df.groupby(c, observed=False).transform(sum) + expected = df[["a"]] + tm.assert_frame_equal(result, expected) + + tm.assert_frame_equal( + df.groupby(c, observed=False).transform(lambda xs: np.sum(xs)), df[["a"]] + ) + + # GH 9603 + df = DataFrame({"a": [1, 0, 0, 0]}) + c = pd.cut(df.a, [0, 1, 2, 3, 4], labels=Categorical(list("abcd"))) + result = df.groupby(c, observed=False).apply(len) + + exp_index = CategoricalIndex(c.values.categories, ordered=c.values.ordered) + expected = Series([1, 0, 0, 0], index=exp_index) + expected.index.name = "a" + tm.assert_series_equal(result, expected) + + # more basic + levels = ["foo", "bar", "baz", "qux"] + codes = np.random.default_rng(2).integers(0, 4, size=100) + + cats = Categorical.from_codes(codes, levels, ordered=True) + + data = DataFrame(np.random.default_rng(2).standard_normal((100, 4))) + + result = data.groupby(cats, observed=False).mean() + + expected = data.groupby(np.asarray(cats), observed=False).mean() + exp_idx = CategoricalIndex(levels, categories=cats.categories, ordered=True) + expected = expected.reindex(exp_idx) + + tm.assert_frame_equal(result, expected) + + grouped = data.groupby(cats, observed=False) + desc_result = grouped.describe() + + idx = cats.codes.argsort() + ord_labels = np.asarray(cats).take(idx) + ord_data = data.take(idx) + + exp_cats = Categorical( + ord_labels, ordered=True, categories=["foo", "bar", "baz", "qux"] + ) + expected = ord_data.groupby(exp_cats, sort=False, observed=False).describe() + tm.assert_frame_equal(desc_result, expected) + + # GH 10460 + expc = Categorical.from_codes(np.arange(4).repeat(8), levels, ordered=True) + exp = CategoricalIndex(expc) + tm.assert_index_equal( + (desc_result.stack(future_stack=True).index.get_level_values(0)), exp + ) + exp = Index(["count", "mean", "std", "min", "25%", "50%", "75%", "max"] * 4) + tm.assert_index_equal( + (desc_result.stack(future_stack=True).index.get_level_values(1)), exp + ) + + +def test_level_get_group(observed): + # GH15155 + df = DataFrame( + data=np.arange(2, 22, 2), + index=MultiIndex( + levels=[CategoricalIndex(["a", "b"]), range(10)], + codes=[[0] * 5 + [1] * 5, range(10)], + names=["Index1", "Index2"], + ), + ) + g = df.groupby(level=["Index1"], observed=observed) + + # expected should equal test.loc[["a"]] + # GH15166 + expected = DataFrame( + data=np.arange(2, 12, 2), + index=MultiIndex( + levels=[CategoricalIndex(["a", "b"]), range(5)], + codes=[[0] * 5, range(5)], + names=["Index1", "Index2"], + ), + ) + msg = "you will need to pass a length-1 tuple" + with tm.assert_produces_warning(FutureWarning, match=msg): + # GH#25971 - warn when not passing a length-1 tuple + result = g.get_group("a") + + tm.assert_frame_equal(result, expected) + + +def test_sorting_with_different_categoricals(): + # GH 24271 + df = DataFrame( + { + "group": ["A"] * 6 + ["B"] * 6, + "dose": ["high", "med", "low"] * 4, + "outcomes": np.arange(12.0), + } + ) + + df.dose = Categorical(df.dose, categories=["low", "med", "high"], ordered=True) + + result = df.groupby("group")["dose"].value_counts() + result = result.sort_index(level=0, sort_remaining=True) + index = ["low", "med", "high", "low", "med", "high"] + index = Categorical(index, categories=["low", "med", "high"], ordered=True) + index = [["A", "A", "A", "B", "B", "B"], CategoricalIndex(index)] + index = MultiIndex.from_arrays(index, names=["group", "dose"]) + expected = Series([2] * 6, index=index, name="count") + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("ordered", [True, False]) +def test_apply(ordered): + # GH 10138 + + dense = Categorical(list("abc"), ordered=ordered) + + # 'b' is in the categories but not in the list + missing = Categorical(list("aaa"), categories=["a", "b"], ordered=ordered) + values = np.arange(len(dense)) + df = DataFrame({"missing": missing, "dense": dense, "values": values}) + grouped = df.groupby(["missing", "dense"], observed=True) + + # missing category 'b' should still exist in the output index + idx = MultiIndex.from_arrays([missing, dense], names=["missing", "dense"]) + expected = DataFrame([0, 1, 2.0], index=idx, columns=["values"]) + + result = grouped.apply(lambda x: np.mean(x, axis=0)) + tm.assert_frame_equal(result, expected) + + result = grouped.mean() + tm.assert_frame_equal(result, expected) + + msg = "using DataFrameGroupBy.mean" + with tm.assert_produces_warning(FutureWarning, match=msg): + # GH#53425 + result = grouped.agg(np.mean) + tm.assert_frame_equal(result, expected) + + # but for transform we should still get back the original index + idx = MultiIndex.from_arrays([missing, dense], names=["missing", "dense"]) + expected = Series(1, index=idx) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = grouped.apply(lambda x: 1) + tm.assert_series_equal(result, expected) + + +@pytest.mark.filterwarnings("ignore:invalid value encountered in cast:RuntimeWarning") +def test_observed(observed, using_infer_string): + # multiple groupers, don't re-expand the output space + # of the grouper + # gh-14942 (implement) + # gh-10132 (back-compat) + # gh-8138 (back-compat) + # gh-8869 + + cat1 = Categorical(["a", "a", "b", "b"], categories=["a", "b", "z"], ordered=True) + cat2 = Categorical(["c", "d", "c", "d"], categories=["c", "d", "y"], ordered=True) + df = DataFrame({"A": cat1, "B": cat2, "values": [1, 2, 3, 4]}) + df["C"] = ["foo", "bar"] * 2 + + # multiple groupers with a non-cat + gb = df.groupby(["A", "B", "C"], observed=observed) + exp_index = MultiIndex.from_arrays( + [cat1, cat2, ["foo", "bar"] * 2], names=["A", "B", "C"] + ) + expected = DataFrame({"values": Series([1, 2, 3, 4], index=exp_index)}).sort_index() + result = gb.sum() + if not observed: + expected = cartesian_product_for_groupers( + expected, [cat1, cat2, ["foo", "bar"]], list("ABC"), fill_value=0 + ) + + tm.assert_frame_equal(result, expected) + + gb = df.groupby(["A", "B"], observed=observed) + exp_index = MultiIndex.from_arrays([cat1, cat2], names=["A", "B"]) + expected = DataFrame( + {"values": [1, 2, 3, 4], "C": ["foo", "bar", "foo", "bar"]}, index=exp_index + ) + result = gb.sum() + if not observed: + expected = cartesian_product_for_groupers( + expected, + [cat1, cat2], + list("AB"), + fill_value={"values": 0, "C": ""} if using_infer_string else 0, + ) + + tm.assert_frame_equal(result, expected) + + result = gb["C"].sum() + expected = expected["C"] + tm.assert_series_equal(result, expected) + + # https://github.com/pandas-dev/pandas/issues/8138 + d = { + "cat": Categorical( + ["a", "b", "a", "b"], categories=["a", "b", "c"], ordered=True + ), + "ints": [1, 1, 2, 2], + "val": [10, 20, 30, 40], + } + df = DataFrame(d) + + # Grouping on a single column + groups_single_key = df.groupby("cat", observed=observed) + result = groups_single_key.mean() + + exp_index = CategoricalIndex( + list("ab"), name="cat", categories=list("abc"), ordered=True + ) + expected = DataFrame({"ints": [1.5, 1.5], "val": [20.0, 30]}, index=exp_index) + if not observed: + index = CategoricalIndex( + list("abc"), name="cat", categories=list("abc"), ordered=True + ) + expected = expected.reindex(index) + + tm.assert_frame_equal(result, expected) + + # Grouping on two columns + groups_double_key = df.groupby(["cat", "ints"], observed=observed) + result = groups_double_key.agg("mean") + expected = DataFrame( + { + "val": [10.0, 30.0, 20.0, 40.0], + "cat": Categorical( + ["a", "a", "b", "b"], categories=["a", "b", "c"], ordered=True + ), + "ints": [1, 2, 1, 2], + } + ).set_index(["cat", "ints"]) + if not observed: + expected = cartesian_product_for_groupers( + expected, [df.cat.values, [1, 2]], ["cat", "ints"] + ) + + tm.assert_frame_equal(result, expected) + + # GH 10132 + for key in [("a", 1), ("b", 2), ("b", 1), ("a", 2)]: + c, i = key + result = groups_double_key.get_group(key) + expected = df[(df.cat == c) & (df.ints == i)] + tm.assert_frame_equal(result, expected) + + # gh-8869 + # with as_index + d = { + "foo": [10, 8, 4, 8, 4, 1, 1], + "bar": [10, 20, 30, 40, 50, 60, 70], + "baz": ["d", "c", "e", "a", "a", "d", "c"], + } + df = DataFrame(d) + cat = pd.cut(df["foo"], np.linspace(0, 10, 3)) + df["range"] = cat + groups = df.groupby(["range", "baz"], as_index=False, observed=observed) + result = groups.agg("mean") + + groups2 = df.groupby(["range", "baz"], as_index=True, observed=observed) + expected = groups2.agg("mean").reset_index() + tm.assert_frame_equal(result, expected) + + +def test_observed_codes_remap(observed): + d = {"C1": [3, 3, 4, 5], "C2": [1, 2, 3, 4], "C3": [10, 100, 200, 34]} + df = DataFrame(d) + values = pd.cut(df["C1"], [1, 2, 3, 6]) + values.name = "cat" + groups_double_key = df.groupby([values, "C2"], observed=observed) + + idx = MultiIndex.from_arrays([values, [1, 2, 3, 4]], names=["cat", "C2"]) + expected = DataFrame( + {"C1": [3.0, 3.0, 4.0, 5.0], "C3": [10.0, 100.0, 200.0, 34.0]}, index=idx + ) + if not observed: + expected = cartesian_product_for_groupers( + expected, [values.values, [1, 2, 3, 4]], ["cat", "C2"] + ) + + result = groups_double_key.agg("mean") + tm.assert_frame_equal(result, expected) + + +def test_observed_perf(): + # we create a cartesian product, so this is + # non-performant if we don't use observed values + # gh-14942 + df = DataFrame( + { + "cat": np.random.default_rng(2).integers(0, 255, size=30000), + "int_id": np.random.default_rng(2).integers(0, 255, size=30000), + "other_id": np.random.default_rng(2).integers(0, 10000, size=30000), + "foo": 0, + } + ) + df["cat"] = df.cat.astype(str).astype("category") + + grouped = df.groupby(["cat", "int_id", "other_id"], observed=True) + result = grouped.count() + assert result.index.levels[0].nunique() == df.cat.nunique() + assert result.index.levels[1].nunique() == df.int_id.nunique() + assert result.index.levels[2].nunique() == df.other_id.nunique() + + +def test_observed_groups(observed): + # gh-20583 + # test that we have the appropriate groups + + cat = Categorical(["a", "c", "a"], categories=["a", "b", "c"]) + df = DataFrame({"cat": cat, "vals": [1, 2, 3]}) + g = df.groupby("cat", observed=observed) + + result = g.groups + if observed: + expected = {"a": Index([0, 2], dtype="int64"), "c": Index([1], dtype="int64")} + else: + expected = { + "a": Index([0, 2], dtype="int64"), + "b": Index([], dtype="int64"), + "c": Index([1], dtype="int64"), + } + + tm.assert_dict_equal(result, expected) + + +@pytest.mark.parametrize( + "keys, expected_values, expected_index_levels", + [ + ("a", [15, 9, 0], CategoricalIndex([1, 2, 3], name="a")), + ( + ["a", "b"], + [7, 8, 0, 0, 0, 9, 0, 0, 0], + [CategoricalIndex([1, 2, 3], name="a"), Index([4, 5, 6])], + ), + ( + ["a", "a2"], + [15, 0, 0, 0, 9, 0, 0, 0, 0], + [ + CategoricalIndex([1, 2, 3], name="a"), + CategoricalIndex([1, 2, 3], name="a"), + ], + ), + ], +) +@pytest.mark.parametrize("test_series", [True, False]) +def test_unobserved_in_index(keys, expected_values, expected_index_levels, test_series): + # GH#49354 - ensure unobserved cats occur when grouping by index levels + df = DataFrame( + { + "a": Categorical([1, 1, 2], categories=[1, 2, 3]), + "a2": Categorical([1, 1, 2], categories=[1, 2, 3]), + "b": [4, 5, 6], + "c": [7, 8, 9], + } + ).set_index(["a", "a2"]) + if "b" not in keys: + # Only keep b when it is used for grouping for consistent columns in the result + df = df.drop(columns="b") + + gb = df.groupby(keys, observed=False) + if test_series: + gb = gb["c"] + result = gb.sum() + + if len(keys) == 1: + index = expected_index_levels + else: + codes = [[0, 0, 0, 1, 1, 1, 2, 2, 2], 3 * [0, 1, 2]] + index = MultiIndex( + expected_index_levels, + codes=codes, + names=keys, + ) + expected = DataFrame({"c": expected_values}, index=index) + if test_series: + expected = expected["c"] + tm.assert_equal(result, expected) + + +def test_observed_groups_with_nan(observed): + # GH 24740 + df = DataFrame( + { + "cat": Categorical(["a", np.nan, "a"], categories=["a", "b", "d"]), + "vals": [1, 2, 3], + } + ) + g = df.groupby("cat", observed=observed) + result = g.groups + if observed: + expected = {"a": Index([0, 2], dtype="int64")} + else: + expected = { + "a": Index([0, 2], dtype="int64"), + "b": Index([], dtype="int64"), + "d": Index([], dtype="int64"), + } + tm.assert_dict_equal(result, expected) + + +def test_observed_nth(): + # GH 26385 + cat = Categorical(["a", np.nan, np.nan], categories=["a", "b", "c"]) + ser = Series([1, 2, 3]) + df = DataFrame({"cat": cat, "ser": ser}) + + result = df.groupby("cat", observed=False)["ser"].nth(0) + expected = df["ser"].iloc[[0]] + tm.assert_series_equal(result, expected) + + +def test_dataframe_categorical_with_nan(observed): + # GH 21151 + s1 = Categorical([np.nan, "a", np.nan, "a"], categories=["a", "b", "c"]) + s2 = Series([1, 2, 3, 4]) + df = DataFrame({"s1": s1, "s2": s2}) + result = df.groupby("s1", observed=observed).first().reset_index() + if observed: + expected = DataFrame( + {"s1": Categorical(["a"], categories=["a", "b", "c"]), "s2": [2]} + ) + else: + expected = DataFrame( + { + "s1": Categorical(["a", "b", "c"], categories=["a", "b", "c"]), + "s2": [2, np.nan, np.nan], + } + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("ordered", [True, False]) +@pytest.mark.parametrize("observed", [True, False]) +@pytest.mark.parametrize("sort", [True, False]) +def test_dataframe_categorical_ordered_observed_sort(ordered, observed, sort): + # GH 25871: Fix groupby sorting on ordered Categoricals + # GH 25167: Groupby with observed=True doesn't sort + + # Build a dataframe with cat having one unobserved category ('missing'), + # and a Series with identical values + label = Categorical( + ["d", "a", "b", "a", "d", "b"], + categories=["a", "b", "missing", "d"], + ordered=ordered, + ) + val = Series(["d", "a", "b", "a", "d", "b"]) + df = DataFrame({"label": label, "val": val}) + + # aggregate on the Categorical + result = df.groupby("label", observed=observed, sort=sort)["val"].aggregate("first") + + # If ordering works, we expect index labels equal to aggregation results, + # except for 'observed=False': label 'missing' has aggregation None + label = Series(result.index.array, dtype="object") + aggr = Series(result.array) + if not observed: + aggr[aggr.isna()] = "missing" + if not all(label == aggr): + msg = ( + "Labels and aggregation results not consistently sorted\n" + f"for (ordered={ordered}, observed={observed}, sort={sort})\n" + f"Result:\n{result}" + ) + assert False, msg + + +def test_datetime(): + # GH9049: ensure backward compatibility + levels = pd.date_range("2014-01-01", periods=4) + codes = np.random.default_rng(2).integers(0, 4, size=100) + + cats = Categorical.from_codes(codes, levels, ordered=True) + + data = DataFrame(np.random.default_rng(2).standard_normal((100, 4))) + result = data.groupby(cats, observed=False).mean() + + expected = data.groupby(np.asarray(cats), observed=False).mean() + expected = expected.reindex(levels) + expected.index = CategoricalIndex( + expected.index, categories=expected.index, ordered=True + ) + + tm.assert_frame_equal(result, expected) + + grouped = data.groupby(cats, observed=False) + desc_result = grouped.describe() + + idx = cats.codes.argsort() + ord_labels = cats.take(idx) + ord_data = data.take(idx) + expected = ord_data.groupby(ord_labels, observed=False).describe() + tm.assert_frame_equal(desc_result, expected) + tm.assert_index_equal(desc_result.index, expected.index) + tm.assert_index_equal( + desc_result.index.get_level_values(0), expected.index.get_level_values(0) + ) + + # GH 10460 + expc = Categorical.from_codes(np.arange(4).repeat(8), levels, ordered=True) + exp = CategoricalIndex(expc) + tm.assert_index_equal( + (desc_result.stack(future_stack=True).index.get_level_values(0)), exp + ) + exp = Index(["count", "mean", "std", "min", "25%", "50%", "75%", "max"] * 4) + tm.assert_index_equal( + (desc_result.stack(future_stack=True).index.get_level_values(1)), exp + ) + + +def test_categorical_index(): + s = np.random.default_rng(2) + levels = ["foo", "bar", "baz", "qux"] + codes = s.integers(0, 4, size=20) + cats = Categorical.from_codes(codes, levels, ordered=True) + df = DataFrame(np.repeat(np.arange(20), 4).reshape(-1, 4), columns=list("abcd")) + df["cats"] = cats + + # with a cat index + result = df.set_index("cats").groupby(level=0, observed=False).sum() + expected = df[list("abcd")].groupby(cats.codes, observed=False).sum() + expected.index = CategoricalIndex( + Categorical.from_codes([0, 1, 2, 3], levels, ordered=True), name="cats" + ) + tm.assert_frame_equal(result, expected) + + # with a cat column, should produce a cat index + result = df.groupby("cats", observed=False).sum() + expected = df[list("abcd")].groupby(cats.codes, observed=False).sum() + expected.index = CategoricalIndex( + Categorical.from_codes([0, 1, 2, 3], levels, ordered=True), name="cats" + ) + tm.assert_frame_equal(result, expected) + + +def test_describe_categorical_columns(): + # GH 11558 + cats = CategoricalIndex( + ["qux", "foo", "baz", "bar"], + categories=["foo", "bar", "baz", "qux"], + ordered=True, + ) + df = DataFrame(np.random.default_rng(2).standard_normal((20, 4)), columns=cats) + result = df.groupby([1, 2, 3, 4] * 5).describe() + + tm.assert_index_equal(result.stack(future_stack=True).columns, cats) + tm.assert_categorical_equal( + result.stack(future_stack=True).columns.values, cats.values + ) + + +def test_unstack_categorical(): + # GH11558 (example is taken from the original issue) + df = DataFrame( + {"a": range(10), "medium": ["A", "B"] * 5, "artist": list("XYXXY") * 2} + ) + df["medium"] = df["medium"].astype("category") + + gcat = df.groupby(["artist", "medium"], observed=False)["a"].count().unstack() + result = gcat.describe() + + exp_columns = CategoricalIndex(["A", "B"], ordered=False, name="medium") + tm.assert_index_equal(result.columns, exp_columns) + tm.assert_categorical_equal(result.columns.values, exp_columns.values) + + result = gcat["A"] + gcat["B"] + expected = Series([6, 4], index=Index(["X", "Y"], name="artist")) + tm.assert_series_equal(result, expected) + + +def test_bins_unequal_len(): + # GH3011 + series = Series([np.nan, np.nan, 1, 1, 2, 2, 3, 3, 4, 4]) + bins = pd.cut(series.dropna().values, 4) + + # len(bins) != len(series) here + with pytest.raises(ValueError, match="Grouper and axis must be same length"): + series.groupby(bins).mean() + + +@pytest.mark.parametrize( + ["series", "data"], + [ + # Group a series with length and index equal to those of the grouper. + (Series(range(4)), {"A": [0, 3], "B": [1, 2]}), + # Group a series with length equal to that of the grouper and index unequal to + # that of the grouper. + (Series(range(4)).rename(lambda idx: idx + 1), {"A": [2], "B": [0, 1]}), + # GH44179: Group a series with length unequal to that of the grouper. + (Series(range(7)), {"A": [0, 3], "B": [1, 2]}), + ], +) +def test_categorical_series(series, data): + # Group the given series by a series with categorical data type such that group A + # takes indices 0 and 3 and group B indices 1 and 2, obtaining the values mapped in + # the given data. + groupby = series.groupby(Series(list("ABBA"), dtype="category"), observed=False) + result = groupby.aggregate(list) + expected = Series(data, index=CategoricalIndex(data.keys())) + tm.assert_series_equal(result, expected) + + +def test_as_index(): + # GH13204 + df = DataFrame( + { + "cat": Categorical([1, 2, 2], [1, 2, 3]), + "A": [10, 11, 11], + "B": [101, 102, 103], + } + ) + result = df.groupby(["cat", "A"], as_index=False, observed=True).sum() + expected = DataFrame( + { + "cat": Categorical([1, 2], categories=df.cat.cat.categories), + "A": [10, 11], + "B": [101, 205], + }, + columns=["cat", "A", "B"], + ) + tm.assert_frame_equal(result, expected) + + # function grouper + f = lambda r: df.loc[r, "A"] + msg = "A grouping .* was excluded from the result" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby(["cat", f], as_index=False, observed=True).sum() + expected = DataFrame( + { + "cat": Categorical([1, 2], categories=df.cat.cat.categories), + "A": [10, 22], + "B": [101, 205], + }, + columns=["cat", "A", "B"], + ) + tm.assert_frame_equal(result, expected) + + # another not in-axis grouper (conflicting names in index) + s = Series(["a", "b", "b"], name="cat") + msg = "A grouping .* was excluded from the result" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby(["cat", s], as_index=False, observed=True).sum() + tm.assert_frame_equal(result, expected) + + # is original index dropped? + group_columns = ["cat", "A"] + expected = DataFrame( + { + "cat": Categorical([1, 2], categories=df.cat.cat.categories), + "A": [10, 11], + "B": [101, 205], + }, + columns=["cat", "A", "B"], + ) + + for name in [None, "X", "B"]: + df.index = Index(list("abc"), name=name) + result = df.groupby(group_columns, as_index=False, observed=True).sum() + + tm.assert_frame_equal(result, expected) + + +def test_preserve_categories(): + # GH-13179 + categories = list("abc") + + # ordered=True + df = DataFrame({"A": Categorical(list("ba"), categories=categories, ordered=True)}) + sort_index = CategoricalIndex(categories, categories, ordered=True, name="A") + nosort_index = CategoricalIndex(list("bac"), categories, ordered=True, name="A") + tm.assert_index_equal( + df.groupby("A", sort=True, observed=False).first().index, sort_index + ) + # GH#42482 - don't sort result when sort=False, even when ordered=True + tm.assert_index_equal( + df.groupby("A", sort=False, observed=False).first().index, nosort_index + ) + + # ordered=False + df = DataFrame({"A": Categorical(list("ba"), categories=categories, ordered=False)}) + sort_index = CategoricalIndex(categories, categories, ordered=False, name="A") + # GH#48749 - don't change order of categories + # GH#42482 - don't sort result when sort=False, even when ordered=True + nosort_index = CategoricalIndex(list("bac"), list("abc"), ordered=False, name="A") + tm.assert_index_equal( + df.groupby("A", sort=True, observed=False).first().index, sort_index + ) + tm.assert_index_equal( + df.groupby("A", sort=False, observed=False).first().index, nosort_index + ) + + +def test_preserve_categorical_dtype(): + # GH13743, GH13854 + df = DataFrame( + { + "A": [1, 2, 1, 1, 2], + "B": [10, 16, 22, 28, 34], + "C1": Categorical(list("abaab"), categories=list("bac"), ordered=False), + "C2": Categorical(list("abaab"), categories=list("bac"), ordered=True), + } + ) + # single grouper + exp_full = DataFrame( + { + "A": [2.0, 1.0, np.nan], + "B": [25.0, 20.0, np.nan], + "C1": Categorical(list("bac"), categories=list("bac"), ordered=False), + "C2": Categorical(list("bac"), categories=list("bac"), ordered=True), + } + ) + for col in ["C1", "C2"]: + result1 = df.groupby(by=col, as_index=False, observed=False).mean( + numeric_only=True + ) + result2 = ( + df.groupby(by=col, as_index=True, observed=False) + .mean(numeric_only=True) + .reset_index() + ) + expected = exp_full.reindex(columns=result1.columns) + tm.assert_frame_equal(result1, expected) + tm.assert_frame_equal(result2, expected) + + +@pytest.mark.parametrize( + "func, values", + [ + ("first", ["second", "first"]), + ("last", ["fourth", "third"]), + ("min", ["fourth", "first"]), + ("max", ["second", "third"]), + ], +) +def test_preserve_on_ordered_ops(func, values): + # gh-18502 + # preserve the categoricals on ops + c = Categorical(["first", "second", "third", "fourth"], ordered=True) + df = DataFrame({"payload": [-1, -2, -1, -2], "col": c}) + g = df.groupby("payload") + result = getattr(g, func)() + expected = DataFrame( + {"payload": [-2, -1], "col": Series(values, dtype=c.dtype)} + ).set_index("payload") + tm.assert_frame_equal(result, expected) + + # we should also preserve categorical for SeriesGroupBy + sgb = df.groupby("payload")["col"] + result = getattr(sgb, func)() + expected = expected["col"] + tm.assert_series_equal(result, expected) + + +def test_categorical_no_compress(): + data = Series(np.random.default_rng(2).standard_normal(9)) + + codes = np.array([0, 0, 0, 1, 1, 1, 2, 2, 2]) + cats = Categorical.from_codes(codes, [0, 1, 2], ordered=True) + + result = data.groupby(cats, observed=False).mean() + exp = data.groupby(codes, observed=False).mean() + + exp.index = CategoricalIndex( + exp.index, categories=cats.categories, ordered=cats.ordered + ) + tm.assert_series_equal(result, exp) + + codes = np.array([0, 0, 0, 1, 1, 1, 3, 3, 3]) + cats = Categorical.from_codes(codes, [0, 1, 2, 3], ordered=True) + + result = data.groupby(cats, observed=False).mean() + exp = data.groupby(codes, observed=False).mean().reindex(cats.categories) + exp.index = CategoricalIndex( + exp.index, categories=cats.categories, ordered=cats.ordered + ) + tm.assert_series_equal(result, exp) + + cats = Categorical( + ["a", "a", "a", "b", "b", "b", "c", "c", "c"], + categories=["a", "b", "c", "d"], + ordered=True, + ) + data = DataFrame({"a": [1, 1, 1, 2, 2, 2, 3, 4, 5], "b": cats}) + + result = data.groupby("b", observed=False).mean() + result = result["a"].values + exp = np.array([1, 2, 4, np.nan]) + tm.assert_numpy_array_equal(result, exp) + + +def test_groupby_empty_with_category(): + # GH-9614 + # test fix for when group by on None resulted in + # coercion of dtype categorical -> float + df = DataFrame({"A": [None] * 3, "B": Categorical(["train", "train", "test"])}) + result = df.groupby("A").first()["B"] + expected = Series( + Categorical([], categories=["test", "train"]), + index=Series([], dtype="object", name="A"), + name="B", + ) + tm.assert_series_equal(result, expected) + + +def test_sort(): + # https://stackoverflow.com/questions/23814368/sorting-pandas- + # categorical-labels-after-groupby + # This should result in a properly sorted Series so that the plot + # has a sorted x axis + # self.cat.groupby(['value_group'])['value_group'].count().plot(kind='bar') + + df = DataFrame({"value": np.random.default_rng(2).integers(0, 10000, 100)}) + labels = [f"{i} - {i+499}" for i in range(0, 10000, 500)] + cat_labels = Categorical(labels, labels) + + df = df.sort_values(by=["value"], ascending=True) + df["value_group"] = pd.cut( + df.value, range(0, 10500, 500), right=False, labels=cat_labels + ) + + res = df.groupby(["value_group"], observed=False)["value_group"].count() + exp = res[sorted(res.index, key=lambda x: float(x.split()[0]))] + exp.index = CategoricalIndex(exp.index, name=exp.index.name) + tm.assert_series_equal(res, exp) + + +@pytest.mark.parametrize("ordered", [True, False]) +def test_sort2(sort, ordered): + # dataframe groupby sort was being ignored # GH 8868 + # GH#48749 - don't change order of categories + # GH#42482 - don't sort result when sort=False, even when ordered=True + df = DataFrame( + [ + ["(7.5, 10]", 10, 10], + ["(7.5, 10]", 8, 20], + ["(2.5, 5]", 5, 30], + ["(5, 7.5]", 6, 40], + ["(2.5, 5]", 4, 50], + ["(0, 2.5]", 1, 60], + ["(5, 7.5]", 7, 70], + ], + columns=["range", "foo", "bar"], + ) + df["range"] = Categorical(df["range"], ordered=ordered) + result = df.groupby("range", sort=sort, observed=False).first() + + if sort: + data_values = [[1, 60], [5, 30], [6, 40], [10, 10]] + index_values = ["(0, 2.5]", "(2.5, 5]", "(5, 7.5]", "(7.5, 10]"] + else: + data_values = [[10, 10], [5, 30], [6, 40], [1, 60]] + index_values = ["(7.5, 10]", "(2.5, 5]", "(5, 7.5]", "(0, 2.5]"] + expected = DataFrame( + data_values, + columns=["foo", "bar"], + index=CategoricalIndex(index_values, name="range", ordered=ordered), + ) + + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("ordered", [True, False]) +def test_sort_datetimelike(sort, ordered): + # GH10505 + # GH#42482 - don't sort result when sort=False, even when ordered=True + + # use same data as test_groupby_sort_categorical, which category is + # corresponding to datetime.month + df = DataFrame( + { + "dt": [ + datetime(2011, 7, 1), + datetime(2011, 7, 1), + datetime(2011, 2, 1), + datetime(2011, 5, 1), + datetime(2011, 2, 1), + datetime(2011, 1, 1), + datetime(2011, 5, 1), + ], + "foo": [10, 8, 5, 6, 4, 1, 7], + "bar": [10, 20, 30, 40, 50, 60, 70], + }, + columns=["dt", "foo", "bar"], + ) + + # ordered=True + df["dt"] = Categorical(df["dt"], ordered=ordered) + if sort: + data_values = [[1, 60], [5, 30], [6, 40], [10, 10]] + index_values = [ + datetime(2011, 1, 1), + datetime(2011, 2, 1), + datetime(2011, 5, 1), + datetime(2011, 7, 1), + ] + else: + data_values = [[10, 10], [5, 30], [6, 40], [1, 60]] + index_values = [ + datetime(2011, 7, 1), + datetime(2011, 2, 1), + datetime(2011, 5, 1), + datetime(2011, 1, 1), + ] + expected = DataFrame( + data_values, + columns=["foo", "bar"], + index=CategoricalIndex(index_values, name="dt", ordered=ordered), + ) + result = df.groupby("dt", sort=sort, observed=False).first() + tm.assert_frame_equal(result, expected) + + +def test_empty_sum(): + # https://github.com/pandas-dev/pandas/issues/18678 + df = DataFrame( + {"A": Categorical(["a", "a", "b"], categories=["a", "b", "c"]), "B": [1, 2, 1]} + ) + expected_idx = CategoricalIndex(["a", "b", "c"], name="A") + + # 0 by default + result = df.groupby("A", observed=False).B.sum() + expected = Series([3, 1, 0], expected_idx, name="B") + tm.assert_series_equal(result, expected) + + # min_count=0 + result = df.groupby("A", observed=False).B.sum(min_count=0) + expected = Series([3, 1, 0], expected_idx, name="B") + tm.assert_series_equal(result, expected) + + # min_count=1 + result = df.groupby("A", observed=False).B.sum(min_count=1) + expected = Series([3, 1, np.nan], expected_idx, name="B") + tm.assert_series_equal(result, expected) + + # min_count>1 + result = df.groupby("A", observed=False).B.sum(min_count=2) + expected = Series([3, np.nan, np.nan], expected_idx, name="B") + tm.assert_series_equal(result, expected) + + +def test_empty_prod(): + # https://github.com/pandas-dev/pandas/issues/18678 + df = DataFrame( + {"A": Categorical(["a", "a", "b"], categories=["a", "b", "c"]), "B": [1, 2, 1]} + ) + + expected_idx = CategoricalIndex(["a", "b", "c"], name="A") + + # 1 by default + result = df.groupby("A", observed=False).B.prod() + expected = Series([2, 1, 1], expected_idx, name="B") + tm.assert_series_equal(result, expected) + + # min_count=0 + result = df.groupby("A", observed=False).B.prod(min_count=0) + expected = Series([2, 1, 1], expected_idx, name="B") + tm.assert_series_equal(result, expected) + + # min_count=1 + result = df.groupby("A", observed=False).B.prod(min_count=1) + expected = Series([2, 1, np.nan], expected_idx, name="B") + tm.assert_series_equal(result, expected) + + +def test_groupby_multiindex_categorical_datetime(): + # https://github.com/pandas-dev/pandas/issues/21390 + + df = DataFrame( + { + "key1": Categorical(list("abcbabcba")), + "key2": Categorical( + list(pd.date_range("2018-06-01 00", freq="1min", periods=3)) * 3 + ), + "values": np.arange(9), + } + ) + result = df.groupby(["key1", "key2"], observed=False).mean() + + idx = MultiIndex.from_product( + [ + Categorical(["a", "b", "c"]), + Categorical(pd.date_range("2018-06-01 00", freq="1min", periods=3)), + ], + names=["key1", "key2"], + ) + expected = DataFrame({"values": [0, 4, 8, 3, 4, 5, 6, np.nan, 2]}, index=idx) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "as_index, expected", + [ + ( + True, + Series( + index=MultiIndex.from_arrays( + [Series([1, 1, 2], dtype="category"), [1, 2, 2]], names=["a", "b"] + ), + data=[1, 2, 3], + name="x", + ), + ), + ( + False, + DataFrame( + { + "a": Series([1, 1, 2], dtype="category"), + "b": [1, 2, 2], + "x": [1, 2, 3], + } + ), + ), + ], +) +def test_groupby_agg_observed_true_single_column(as_index, expected): + # GH-23970 + df = DataFrame( + {"a": Series([1, 1, 2], dtype="category"), "b": [1, 2, 2], "x": [1, 2, 3]} + ) + + result = df.groupby(["a", "b"], as_index=as_index, observed=True)["x"].sum() + + tm.assert_equal(result, expected) + + +@pytest.mark.parametrize("fill_value", [None, np.nan, pd.NaT]) +def test_shift(fill_value): + ct = Categorical( + ["a", "b", "c", "d"], categories=["a", "b", "c", "d"], ordered=False + ) + expected = Categorical( + [None, "a", "b", "c"], categories=["a", "b", "c", "d"], ordered=False + ) + res = ct.shift(1, fill_value=fill_value) + tm.assert_equal(res, expected) + + +@pytest.fixture +def df_cat(df): + """ + DataFrame with multiple categorical columns and a column of integers. + Shortened so as not to contain all possible combinations of categories. + Useful for testing `observed` kwarg functionality on GroupBy objects. + + Parameters + ---------- + df: DataFrame + Non-categorical, longer DataFrame from another fixture, used to derive + this one + + Returns + ------- + df_cat: DataFrame + """ + df_cat = df.copy()[:4] # leave out some groups + df_cat["A"] = df_cat["A"].astype("category") + df_cat["B"] = df_cat["B"].astype("category") + df_cat["C"] = Series([1, 2, 3, 4]) + df_cat = df_cat.drop(["D"], axis=1) + return df_cat + + +@pytest.mark.parametrize("operation", ["agg", "apply"]) +def test_seriesgroupby_observed_true(df_cat, operation): + # GH#24880 + # GH#49223 - order of results was wrong when grouping by index levels + lev_a = Index(["bar", "bar", "foo", "foo"], dtype=df_cat["A"].dtype, name="A") + lev_b = Index(["one", "three", "one", "two"], dtype=df_cat["B"].dtype, name="B") + index = MultiIndex.from_arrays([lev_a, lev_b]) + expected = Series(data=[2, 4, 1, 3], index=index, name="C").sort_index() + + grouped = df_cat.groupby(["A", "B"], observed=True)["C"] + msg = "using np.sum" if operation == "apply" else "using SeriesGroupBy.sum" + with tm.assert_produces_warning(FutureWarning, match=msg): + # GH#53425 + result = getattr(grouped, operation)(sum) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("operation", ["agg", "apply"]) +@pytest.mark.parametrize("observed", [False, None]) +def test_seriesgroupby_observed_false_or_none(df_cat, observed, operation): + # GH 24880 + # GH#49223 - order of results was wrong when grouping by index levels + index, _ = MultiIndex.from_product( + [ + CategoricalIndex(["bar", "foo"], ordered=False), + CategoricalIndex(["one", "three", "two"], ordered=False), + ], + names=["A", "B"], + ).sortlevel() + + expected = Series(data=[2, 4, np.nan, 1, np.nan, 3], index=index, name="C") + if operation == "agg": + msg = "The 'downcast' keyword in fillna is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = expected.fillna(0, downcast="infer") + grouped = df_cat.groupby(["A", "B"], observed=observed)["C"] + msg = "using SeriesGroupBy.sum" if operation == "agg" else "using np.sum" + with tm.assert_produces_warning(FutureWarning, match=msg): + # GH#53425 + result = getattr(grouped, operation)(sum) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "observed, index, data", + [ + ( + True, + MultiIndex.from_arrays( + [ + Index(["bar"] * 4 + ["foo"] * 4, dtype="category", name="A"), + Index( + ["one", "one", "three", "three", "one", "one", "two", "two"], + dtype="category", + name="B", + ), + Index(["min", "max"] * 4), + ] + ), + [2, 2, 4, 4, 1, 1, 3, 3], + ), + ( + False, + MultiIndex.from_product( + [ + CategoricalIndex(["bar", "foo"], ordered=False), + CategoricalIndex(["one", "three", "two"], ordered=False), + Index(["min", "max"]), + ], + names=["A", "B", None], + ), + [2, 2, 4, 4, np.nan, np.nan, 1, 1, np.nan, np.nan, 3, 3], + ), + ( + None, + MultiIndex.from_product( + [ + CategoricalIndex(["bar", "foo"], ordered=False), + CategoricalIndex(["one", "three", "two"], ordered=False), + Index(["min", "max"]), + ], + names=["A", "B", None], + ), + [2, 2, 4, 4, np.nan, np.nan, 1, 1, np.nan, np.nan, 3, 3], + ), + ], +) +def test_seriesgroupby_observed_apply_dict(df_cat, observed, index, data): + # GH 24880 + expected = Series(data=data, index=index, name="C") + result = df_cat.groupby(["A", "B"], observed=observed)["C"].apply( + lambda x: {"min": x.min(), "max": x.max()} + ) + tm.assert_series_equal(result, expected) + + +def test_groupby_categorical_series_dataframe_consistent(df_cat): + # GH 20416 + expected = df_cat.groupby(["A", "B"], observed=False)["C"].mean() + result = df_cat.groupby(["A", "B"], observed=False).mean()["C"] + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("code", [([1, 0, 0]), ([0, 0, 0])]) +def test_groupby_categorical_axis_1(code): + # GH 13420 + df = DataFrame({"a": [1, 2, 3, 4], "b": [-1, -2, -3, -4], "c": [5, 6, 7, 8]}) + cat = Categorical.from_codes(code, categories=list("abc")) + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + gb = df.groupby(cat, axis=1, observed=False) + result = gb.mean() + msg = "The 'axis' keyword in DataFrame.groupby is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + gb2 = df.T.groupby(cat, axis=0, observed=False) + expected = gb2.mean().T + tm.assert_frame_equal(result, expected) + + +def test_groupby_cat_preserves_structure(observed, ordered): + # GH 28787 + df = DataFrame( + {"Name": Categorical(["Bob", "Greg"], ordered=ordered), "Item": [1, 2]}, + columns=["Name", "Item"], + ) + expected = df.copy() + + result = ( + df.groupby("Name", observed=observed) + .agg(DataFrame.sum, skipna=True) + .reset_index() + ) + + tm.assert_frame_equal(result, expected) + + +def test_get_nonexistent_category(): + # Accessing a Category that is not in the dataframe + df = DataFrame({"var": ["a", "a", "b", "b"], "val": range(4)}) + with pytest.raises(KeyError, match="'vau'"): + df.groupby("var").apply( + lambda rows: DataFrame( + {"var": [rows.iloc[-1]["var"]], "val": [rows.iloc[-1]["vau"]]} + ) + ) + + +def test_series_groupby_on_2_categoricals_unobserved(reduction_func, observed): + # GH 17605 + if reduction_func == "ngroup": + pytest.skip("ngroup is not truly a reduction") + + df = DataFrame( + { + "cat_1": Categorical(list("AABB"), categories=list("ABCD")), + "cat_2": Categorical(list("AB") * 2, categories=list("ABCD")), + "value": [0.1] * 4, + } + ) + args = get_groupby_method_args(reduction_func, df) + + expected_length = 4 if observed else 16 + + series_groupby = df.groupby(["cat_1", "cat_2"], observed=observed)["value"] + + if reduction_func == "corrwith": + # TODO: implemented SeriesGroupBy.corrwith. See GH 32293 + assert not hasattr(series_groupby, reduction_func) + return + + agg = getattr(series_groupby, reduction_func) + + if not observed and reduction_func in ["idxmin", "idxmax"]: + # idxmin and idxmax are designed to fail on empty inputs + with pytest.raises( + ValueError, match="empty group due to unobserved categories" + ): + agg(*args) + return + + result = agg(*args) + + assert len(result) == expected_length + + +def test_series_groupby_on_2_categoricals_unobserved_zeroes_or_nans( + reduction_func, request +): + # GH 17605 + # Tests whether the unobserved categories in the result contain 0 or NaN + + if reduction_func == "ngroup": + pytest.skip("ngroup is not truly a reduction") + + if reduction_func == "corrwith": # GH 32293 + mark = pytest.mark.xfail( + reason="TODO: implemented SeriesGroupBy.corrwith. See GH 32293" + ) + request.applymarker(mark) + + df = DataFrame( + { + "cat_1": Categorical(list("AABB"), categories=list("ABC")), + "cat_2": Categorical(list("AB") * 2, categories=list("ABC")), + "value": [0.1] * 4, + } + ) + unobserved = [tuple("AC"), tuple("BC"), tuple("CA"), tuple("CB"), tuple("CC")] + args = get_groupby_method_args(reduction_func, df) + + series_groupby = df.groupby(["cat_1", "cat_2"], observed=False)["value"] + agg = getattr(series_groupby, reduction_func) + + if reduction_func in ["idxmin", "idxmax"]: + # idxmin and idxmax are designed to fail on empty inputs + with pytest.raises( + ValueError, match="empty group due to unobserved categories" + ): + agg(*args) + return + + result = agg(*args) + + zero_or_nan = _results_for_groupbys_with_missing_categories[reduction_func] + + for idx in unobserved: + val = result.loc[idx] + assert (pd.isna(zero_or_nan) and pd.isna(val)) or (val == zero_or_nan) + + # If we expect unobserved values to be zero, we also expect the dtype to be int. + # Except for .sum(). If the observed categories sum to dtype=float (i.e. their + # sums have decimals), then the zeros for the missing categories should also be + # floats. + if zero_or_nan == 0 and reduction_func != "sum": + assert np.issubdtype(result.dtype, np.integer) + + +def test_dataframe_groupby_on_2_categoricals_when_observed_is_true(reduction_func): + # GH 23865 + # GH 27075 + # Ensure that df.groupby, when 'by' is two Categorical variables, + # does not return the categories that are not in df when observed=True + if reduction_func == "ngroup": + pytest.skip("ngroup does not return the Categories on the index") + + df = DataFrame( + { + "cat_1": Categorical(list("AABB"), categories=list("ABC")), + "cat_2": Categorical(list("1111"), categories=list("12")), + "value": [0.1, 0.1, 0.1, 0.1], + } + ) + unobserved_cats = [("A", "2"), ("B", "2"), ("C", "1"), ("C", "2")] + + df_grp = df.groupby(["cat_1", "cat_2"], observed=True) + + args = get_groupby_method_args(reduction_func, df) + res = getattr(df_grp, reduction_func)(*args) + + for cat in unobserved_cats: + assert cat not in res.index + + +@pytest.mark.parametrize("observed", [False, None]) +def test_dataframe_groupby_on_2_categoricals_when_observed_is_false( + reduction_func, observed +): + # GH 23865 + # GH 27075 + # Ensure that df.groupby, when 'by' is two Categorical variables, + # returns the categories that are not in df when observed=False/None + + if reduction_func == "ngroup": + pytest.skip("ngroup does not return the Categories on the index") + + df = DataFrame( + { + "cat_1": Categorical(list("AABB"), categories=list("ABC")), + "cat_2": Categorical(list("1111"), categories=list("12")), + "value": [0.1, 0.1, 0.1, 0.1], + } + ) + unobserved_cats = [("A", "2"), ("B", "2"), ("C", "1"), ("C", "2")] + + df_grp = df.groupby(["cat_1", "cat_2"], observed=observed) + + args = get_groupby_method_args(reduction_func, df) + + if not observed and reduction_func in ["idxmin", "idxmax"]: + # idxmin and idxmax are designed to fail on empty inputs + with pytest.raises( + ValueError, match="empty group due to unobserved categories" + ): + getattr(df_grp, reduction_func)(*args) + return + + res = getattr(df_grp, reduction_func)(*args) + + expected = _results_for_groupbys_with_missing_categories[reduction_func] + + if expected is np.nan: + assert res.loc[unobserved_cats].isnull().all().all() + else: + assert (res.loc[unobserved_cats] == expected).all().all() + + +@pytest.mark.filterwarnings("ignore:invalid value encountered in cast:RuntimeWarning") +def test_series_groupby_categorical_aggregation_getitem(): + # GH 8870 + d = {"foo": [10, 8, 4, 1], "bar": [10, 20, 30, 40], "baz": ["d", "c", "d", "c"]} + df = DataFrame(d) + cat = pd.cut(df["foo"], np.linspace(0, 20, 5)) + df["range"] = cat + groups = df.groupby(["range", "baz"], as_index=True, sort=True, observed=False) + result = groups["foo"].agg("mean") + expected = groups.agg("mean")["foo"] + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "func, expected_values", + [(Series.nunique, [1, 1, 2]), (Series.count, [1, 2, 2])], +) +def test_groupby_agg_categorical_columns(func, expected_values): + # 31256 + df = DataFrame( + { + "id": [0, 1, 2, 3, 4], + "groups": [0, 1, 1, 2, 2], + "value": Categorical([0, 0, 0, 0, 1]), + } + ).set_index("id") + result = df.groupby("groups").agg(func) + + expected = DataFrame( + {"value": expected_values}, index=Index([0, 1, 2], name="groups") + ) + tm.assert_frame_equal(result, expected) + + +def test_groupby_agg_non_numeric(): + df = DataFrame({"A": Categorical(["a", "a", "b"], categories=["a", "b", "c"])}) + expected = DataFrame({"A": [2, 1]}, index=np.array([1, 2])) + + result = df.groupby([1, 2, 1]).agg(Series.nunique) + tm.assert_frame_equal(result, expected) + + result = df.groupby([1, 2, 1]).nunique() + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("func", ["first", "last"]) +def test_groupby_first_returned_categorical_instead_of_dataframe(func): + # GH 28641: groupby drops index, when grouping over categorical column with + # first/last. Renamed Categorical instead of DataFrame previously. + df = DataFrame({"A": [1997], "B": Series(["b"], dtype="category").cat.as_ordered()}) + df_grouped = df.groupby("A")["B"] + result = getattr(df_grouped, func)() + + # ordered categorical dtype should be preserved + expected = Series( + ["b"], index=Index([1997], name="A"), name="B", dtype=df["B"].dtype + ) + tm.assert_series_equal(result, expected) + + +def test_read_only_category_no_sort(): + # GH33410 + cats = np.array([1, 2]) + cats.flags.writeable = False + df = DataFrame( + {"a": [1, 3, 5, 7], "b": Categorical([1, 1, 2, 2], categories=Index(cats))} + ) + expected = DataFrame(data={"a": [2.0, 6.0]}, index=CategoricalIndex(cats, name="b")) + result = df.groupby("b", sort=False, observed=False).mean() + tm.assert_frame_equal(result, expected) + + +def test_sorted_missing_category_values(): + # GH 28597 + df = DataFrame( + { + "foo": [ + "small", + "large", + "large", + "large", + "medium", + "large", + "large", + "medium", + ], + "bar": ["C", "A", "A", "C", "A", "C", "A", "C"], + } + ) + df["foo"] = ( + df["foo"] + .astype("category") + .cat.set_categories(["tiny", "small", "medium", "large"], ordered=True) + ) + + expected = DataFrame( + { + "tiny": {"A": 0, "C": 0}, + "small": {"A": 0, "C": 1}, + "medium": {"A": 1, "C": 1}, + "large": {"A": 3, "C": 2}, + } + ) + expected = expected.rename_axis("bar", axis="index") + expected.columns = CategoricalIndex( + ["tiny", "small", "medium", "large"], + categories=["tiny", "small", "medium", "large"], + ordered=True, + name="foo", + dtype="category", + ) + + result = df.groupby(["bar", "foo"], observed=False).size().unstack() + + tm.assert_frame_equal(result, expected) + + +def test_agg_cython_category_not_implemented_fallback(): + # https://github.com/pandas-dev/pandas/issues/31450 + df = DataFrame({"col_num": [1, 1, 2, 3]}) + df["col_cat"] = df["col_num"].astype("category") + + result = df.groupby("col_num").col_cat.first() + + # ordered categorical dtype should definitely be preserved; + # this is unordered, so is less-clear case (if anything, it should raise) + expected = Series( + [1, 2, 3], + index=Index([1, 2, 3], name="col_num"), + name="col_cat", + dtype=df["col_cat"].dtype, + ) + tm.assert_series_equal(result, expected) + + result = df.groupby("col_num").agg({"col_cat": "first"}) + expected = expected.to_frame() + tm.assert_frame_equal(result, expected) + + +def test_aggregate_categorical_with_isnan(): + # GH 29837 + df = DataFrame( + { + "A": [1, 1, 1, 1], + "B": [1, 2, 1, 2], + "numerical_col": [0.1, 0.2, np.nan, 0.3], + "object_col": ["foo", "bar", "foo", "fee"], + "categorical_col": ["foo", "bar", "foo", "fee"], + } + ) + + df = df.astype({"categorical_col": "category"}) + + result = df.groupby(["A", "B"]).agg(lambda df: df.isna().sum()) + index = MultiIndex.from_arrays([[1, 1], [1, 2]], names=("A", "B")) + expected = DataFrame( + data={ + "numerical_col": [1, 0], + "object_col": [0, 0], + "categorical_col": [0, 0], + }, + index=index, + ) + tm.assert_frame_equal(result, expected) + + +def test_categorical_transform(): + # GH 29037 + df = DataFrame( + { + "package_id": [1, 1, 1, 2, 2, 3], + "status": [ + "Waiting", + "OnTheWay", + "Delivered", + "Waiting", + "OnTheWay", + "Waiting", + ], + } + ) + + delivery_status_type = pd.CategoricalDtype( + categories=["Waiting", "OnTheWay", "Delivered"], ordered=True + ) + df["status"] = df["status"].astype(delivery_status_type) + msg = "using SeriesGroupBy.max" + with tm.assert_produces_warning(FutureWarning, match=msg): + # GH#53425 + df["last_status"] = df.groupby("package_id")["status"].transform(max) + result = df.copy() + + expected = DataFrame( + { + "package_id": [1, 1, 1, 2, 2, 3], + "status": [ + "Waiting", + "OnTheWay", + "Delivered", + "Waiting", + "OnTheWay", + "Waiting", + ], + "last_status": [ + "Delivered", + "Delivered", + "Delivered", + "OnTheWay", + "OnTheWay", + "Waiting", + ], + } + ) + + expected["status"] = expected["status"].astype(delivery_status_type) + + # .transform(max) should preserve ordered categoricals + expected["last_status"] = expected["last_status"].astype(delivery_status_type) + + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("func", ["first", "last"]) +def test_series_groupby_first_on_categorical_col_grouped_on_2_categoricals( + func: str, observed: bool +): + # GH 34951 + cat = Categorical([0, 0, 1, 1]) + val = [0, 1, 1, 0] + df = DataFrame({"a": cat, "b": cat, "c": val}) + + cat2 = Categorical([0, 1]) + idx = MultiIndex.from_product([cat2, cat2], names=["a", "b"]) + expected_dict = { + "first": Series([0, np.nan, np.nan, 1], idx, name="c"), + "last": Series([1, np.nan, np.nan, 0], idx, name="c"), + } + + expected = expected_dict[func] + if observed: + expected = expected.dropna().astype(np.int64) + + srs_grp = df.groupby(["a", "b"], observed=observed)["c"] + result = getattr(srs_grp, func)() + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("func", ["first", "last"]) +def test_df_groupby_first_on_categorical_col_grouped_on_2_categoricals( + func: str, observed: bool +): + # GH 34951 + cat = Categorical([0, 0, 1, 1]) + val = [0, 1, 1, 0] + df = DataFrame({"a": cat, "b": cat, "c": val}) + + cat2 = Categorical([0, 1]) + idx = MultiIndex.from_product([cat2, cat2], names=["a", "b"]) + expected_dict = { + "first": Series([0, np.nan, np.nan, 1], idx, name="c"), + "last": Series([1, np.nan, np.nan, 0], idx, name="c"), + } + + expected = expected_dict[func].to_frame() + if observed: + expected = expected.dropna().astype(np.int64) + + df_grp = df.groupby(["a", "b"], observed=observed) + result = getattr(df_grp, func)() + tm.assert_frame_equal(result, expected) + + +def test_groupby_categorical_indices_unused_categories(): + # GH#38642 + df = DataFrame( + { + "key": Categorical(["b", "b", "a"], categories=["a", "b", "c"]), + "col": range(3), + } + ) + grouped = df.groupby("key", sort=False, observed=False) + result = grouped.indices + expected = { + "b": np.array([0, 1], dtype="intp"), + "a": np.array([2], dtype="intp"), + "c": np.array([], dtype="intp"), + } + assert result.keys() == expected.keys() + for key in result.keys(): + tm.assert_numpy_array_equal(result[key], expected[key]) + + +@pytest.mark.parametrize("func", ["first", "last"]) +def test_groupby_last_first_preserve_categoricaldtype(func): + # GH#33090 + df = DataFrame({"a": [1, 2, 3]}) + df["b"] = df["a"].astype("category") + result = getattr(df.groupby("a")["b"], func)() + expected = Series( + Categorical([1, 2, 3]), name="b", index=Index([1, 2, 3], name="a") + ) + tm.assert_series_equal(expected, result) + + +def test_groupby_categorical_observed_nunique(): + # GH#45128 + df = DataFrame({"a": [1, 2], "b": [1, 2], "c": [10, 11]}) + df = df.astype(dtype={"a": "category", "b": "category"}) + result = df.groupby(["a", "b"], observed=True).nunique()["c"] + expected = Series( + [1, 1], + index=MultiIndex.from_arrays( + [CategoricalIndex([1, 2], name="a"), CategoricalIndex([1, 2], name="b")] + ), + name="c", + ) + tm.assert_series_equal(result, expected) + + +def test_groupby_categorical_aggregate_functions(): + # GH#37275 + dtype = pd.CategoricalDtype(categories=["small", "big"], ordered=True) + df = DataFrame( + [[1, "small"], [1, "big"], [2, "small"]], columns=["grp", "description"] + ).astype({"description": dtype}) + + result = df.groupby("grp")["description"].max() + expected = Series( + ["big", "small"], + index=Index([1, 2], name="grp"), + name="description", + dtype=pd.CategoricalDtype(categories=["small", "big"], ordered=True), + ) + + tm.assert_series_equal(result, expected) + + +def test_groupby_categorical_dropna(observed, dropna): + # GH#48645 - dropna should have no impact on the result when there are no NA values + cat = Categorical([1, 2], categories=[1, 2, 3]) + df = DataFrame({"x": Categorical([1, 2], categories=[1, 2, 3]), "y": [3, 4]}) + gb = df.groupby("x", observed=observed, dropna=dropna) + result = gb.sum() + + if observed: + expected = DataFrame({"y": [3, 4]}, index=cat) + else: + index = CategoricalIndex([1, 2, 3], [1, 2, 3]) + expected = DataFrame({"y": [3, 4, 0]}, index=index) + expected.index.name = "x" + + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("index_kind", ["range", "single", "multi"]) +@pytest.mark.parametrize("ordered", [True, False]) +def test_category_order_reducer( + request, as_index, sort, observed, reduction_func, index_kind, ordered +): + # GH#48749 + if reduction_func == "corrwith" and not as_index: + msg = "GH#49950 - corrwith with as_index=False may not have grouping column" + request.applymarker(pytest.mark.xfail(reason=msg)) + elif index_kind != "range" and not as_index: + pytest.skip(reason="Result doesn't have categories, nothing to test") + df = DataFrame( + { + "a": Categorical([2, 1, 2, 3], categories=[1, 4, 3, 2], ordered=ordered), + "b": range(4), + } + ) + if index_kind == "range": + keys = ["a"] + elif index_kind == "single": + keys = ["a"] + df = df.set_index(keys) + elif index_kind == "multi": + keys = ["a", "a2"] + df["a2"] = df["a"] + df = df.set_index(keys) + args = get_groupby_method_args(reduction_func, df) + gb = df.groupby(keys, as_index=as_index, sort=sort, observed=observed) + + if not observed and reduction_func in ["idxmin", "idxmax"]: + # idxmin and idxmax are designed to fail on empty inputs + with pytest.raises( + ValueError, match="empty group due to unobserved categories" + ): + getattr(gb, reduction_func)(*args) + return + + op_result = getattr(gb, reduction_func)(*args) + if as_index: + result = op_result.index.get_level_values("a").categories + else: + result = op_result["a"].cat.categories + expected = Index([1, 4, 3, 2]) + tm.assert_index_equal(result, expected) + + if index_kind == "multi": + result = op_result.index.get_level_values("a2").categories + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize("index_kind", ["single", "multi"]) +@pytest.mark.parametrize("ordered", [True, False]) +def test_category_order_transformer( + as_index, sort, observed, transformation_func, index_kind, ordered +): + # GH#48749 + df = DataFrame( + { + "a": Categorical([2, 1, 2, 3], categories=[1, 4, 3, 2], ordered=ordered), + "b": range(4), + } + ) + if index_kind == "single": + keys = ["a"] + df = df.set_index(keys) + elif index_kind == "multi": + keys = ["a", "a2"] + df["a2"] = df["a"] + df = df.set_index(keys) + args = get_groupby_method_args(transformation_func, df) + gb = df.groupby(keys, as_index=as_index, sort=sort, observed=observed) + warn = FutureWarning if transformation_func == "fillna" else None + msg = "DataFrameGroupBy.fillna is deprecated" + with tm.assert_produces_warning(warn, match=msg): + op_result = getattr(gb, transformation_func)(*args) + result = op_result.index.get_level_values("a").categories + expected = Index([1, 4, 3, 2]) + tm.assert_index_equal(result, expected) + + if index_kind == "multi": + result = op_result.index.get_level_values("a2").categories + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize("index_kind", ["range", "single", "multi"]) +@pytest.mark.parametrize("method", ["head", "tail"]) +@pytest.mark.parametrize("ordered", [True, False]) +def test_category_order_head_tail( + as_index, sort, observed, method, index_kind, ordered +): + # GH#48749 + df = DataFrame( + { + "a": Categorical([2, 1, 2, 3], categories=[1, 4, 3, 2], ordered=ordered), + "b": range(4), + } + ) + if index_kind == "range": + keys = ["a"] + elif index_kind == "single": + keys = ["a"] + df = df.set_index(keys) + elif index_kind == "multi": + keys = ["a", "a2"] + df["a2"] = df["a"] + df = df.set_index(keys) + gb = df.groupby(keys, as_index=as_index, sort=sort, observed=observed) + op_result = getattr(gb, method)() + if index_kind == "range": + result = op_result["a"].cat.categories + else: + result = op_result.index.get_level_values("a").categories + expected = Index([1, 4, 3, 2]) + tm.assert_index_equal(result, expected) + + if index_kind == "multi": + result = op_result.index.get_level_values("a2").categories + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize("index_kind", ["range", "single", "multi"]) +@pytest.mark.parametrize("method", ["apply", "agg", "transform"]) +@pytest.mark.parametrize("ordered", [True, False]) +def test_category_order_apply(as_index, sort, observed, method, index_kind, ordered): + # GH#48749 + if (method == "transform" and index_kind == "range") or ( + not as_index and index_kind != "range" + ): + pytest.skip("No categories in result, nothing to test") + df = DataFrame( + { + "a": Categorical([2, 1, 2, 3], categories=[1, 4, 3, 2], ordered=ordered), + "b": range(4), + } + ) + if index_kind == "range": + keys = ["a"] + elif index_kind == "single": + keys = ["a"] + df = df.set_index(keys) + elif index_kind == "multi": + keys = ["a", "a2"] + df["a2"] = df["a"] + df = df.set_index(keys) + gb = df.groupby(keys, as_index=as_index, sort=sort, observed=observed) + warn = FutureWarning if method == "apply" and index_kind == "range" else None + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(warn, match=msg): + op_result = getattr(gb, method)(lambda x: x.sum(numeric_only=True)) + if (method == "transform" or not as_index) and index_kind == "range": + result = op_result["a"].cat.categories + else: + result = op_result.index.get_level_values("a").categories + expected = Index([1, 4, 3, 2]) + tm.assert_index_equal(result, expected) + + if index_kind == "multi": + result = op_result.index.get_level_values("a2").categories + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize("index_kind", ["range", "single", "multi"]) +def test_many_categories(as_index, sort, index_kind, ordered): + # GH#48749 - Test when the grouper has many categories + if index_kind != "range" and not as_index: + pytest.skip(reason="Result doesn't have categories, nothing to test") + categories = np.arange(9999, -1, -1) + grouper = Categorical([2, 1, 2, 3], categories=categories, ordered=ordered) + df = DataFrame({"a": grouper, "b": range(4)}) + if index_kind == "range": + keys = ["a"] + elif index_kind == "single": + keys = ["a"] + df = df.set_index(keys) + elif index_kind == "multi": + keys = ["a", "a2"] + df["a2"] = df["a"] + df = df.set_index(keys) + gb = df.groupby(keys, as_index=as_index, sort=sort, observed=True) + result = gb.sum() + + # Test is setup so that data and index are the same values + data = [3, 2, 1] if sort else [2, 1, 3] + + index = CategoricalIndex( + data, categories=grouper.categories, ordered=ordered, name="a" + ) + if as_index: + expected = DataFrame({"b": data}) + if index_kind == "multi": + expected.index = MultiIndex.from_frame(DataFrame({"a": index, "a2": index})) + else: + expected.index = index + elif index_kind == "multi": + expected = DataFrame({"a": Series(index), "a2": Series(index), "b": data}) + else: + expected = DataFrame({"a": Series(index), "b": data}) + + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("cat_columns", ["a", "b", ["a", "b"]]) +@pytest.mark.parametrize("keys", ["a", "b", ["a", "b"]]) +def test_groupby_default_depr(cat_columns, keys): + # GH#43999 + df = DataFrame({"a": [1, 1, 2, 3], "b": [4, 5, 6, 7]}) + df[cat_columns] = df[cat_columns].astype("category") + msg = "The default of observed=False is deprecated" + klass = FutureWarning if set(cat_columns) & set(keys) else None + with tm.assert_produces_warning(klass, match=msg): + df.groupby(keys) + + +@pytest.mark.parametrize("test_series", [True, False]) +@pytest.mark.parametrize("keys", [["a1"], ["a1", "a2"]]) +def test_agg_list(request, as_index, observed, reduction_func, test_series, keys): + # GH#52760 + if test_series and reduction_func == "corrwith": + assert not hasattr(SeriesGroupBy, "corrwith") + pytest.skip("corrwith not implemented for SeriesGroupBy") + elif reduction_func == "corrwith": + msg = "GH#32293: attempts to call SeriesGroupBy.corrwith" + request.applymarker(pytest.mark.xfail(reason=msg)) + elif ( + reduction_func == "nunique" + and not test_series + and len(keys) != 1 + and not observed + and not as_index + ): + msg = "GH#52848 - raises a ValueError" + request.applymarker(pytest.mark.xfail(reason=msg)) + + df = DataFrame({"a1": [0, 0, 1], "a2": [2, 3, 3], "b": [4, 5, 6]}) + df = df.astype({"a1": "category", "a2": "category"}) + if "a2" not in keys: + df = df.drop(columns="a2") + gb = df.groupby(by=keys, as_index=as_index, observed=observed) + if test_series: + gb = gb["b"] + args = get_groupby_method_args(reduction_func, df) + + if not observed and reduction_func in ["idxmin", "idxmax"] and keys == ["a1", "a2"]: + with pytest.raises( + ValueError, match="empty group due to unobserved categories" + ): + gb.agg([reduction_func], *args) + return + + result = gb.agg([reduction_func], *args) + expected = getattr(gb, reduction_func)(*args) + + if as_index and (test_series or reduction_func == "size"): + expected = expected.to_frame(reduction_func) + if not test_series: + expected.columns = MultiIndex.from_tuples( + [(ind, "") for ind in expected.columns[:-1]] + [("b", reduction_func)] + ) + elif not as_index: + expected.columns = keys + [reduction_func] + + tm.assert_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_counting.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_counting.py new file mode 100644 index 0000000000000000000000000000000000000000..16d7fe61b90ad3eece2d16345407d21fbece6962 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_counting.py @@ -0,0 +1,394 @@ +from itertools import product +from string import ascii_lowercase + +import numpy as np +import pytest + +from pandas import ( + DataFrame, + Index, + MultiIndex, + Period, + Series, + Timedelta, + Timestamp, + date_range, +) +import pandas._testing as tm + + +class TestCounting: + def test_cumcount(self): + df = DataFrame([["a"], ["a"], ["a"], ["b"], ["a"]], columns=["A"]) + g = df.groupby("A") + sg = g.A + + expected = Series([0, 1, 2, 0, 3]) + + tm.assert_series_equal(expected, g.cumcount()) + tm.assert_series_equal(expected, sg.cumcount()) + + def test_cumcount_empty(self): + ge = DataFrame().groupby(level=0) + se = Series(dtype=object).groupby(level=0) + + # edge case, as this is usually considered float + e = Series(dtype="int64") + + tm.assert_series_equal(e, ge.cumcount()) + tm.assert_series_equal(e, se.cumcount()) + + def test_cumcount_dupe_index(self): + df = DataFrame( + [["a"], ["a"], ["a"], ["b"], ["a"]], columns=["A"], index=[0] * 5 + ) + g = df.groupby("A") + sg = g.A + + expected = Series([0, 1, 2, 0, 3], index=[0] * 5) + + tm.assert_series_equal(expected, g.cumcount()) + tm.assert_series_equal(expected, sg.cumcount()) + + def test_cumcount_mi(self): + mi = MultiIndex.from_tuples([[0, 1], [1, 2], [2, 2], [2, 2], [1, 0]]) + df = DataFrame([["a"], ["a"], ["a"], ["b"], ["a"]], columns=["A"], index=mi) + g = df.groupby("A") + sg = g.A + + expected = Series([0, 1, 2, 0, 3], index=mi) + + tm.assert_series_equal(expected, g.cumcount()) + tm.assert_series_equal(expected, sg.cumcount()) + + def test_cumcount_groupby_not_col(self): + df = DataFrame( + [["a"], ["a"], ["a"], ["b"], ["a"]], columns=["A"], index=[0] * 5 + ) + g = df.groupby([0, 0, 0, 1, 0]) + sg = g.A + + expected = Series([0, 1, 2, 0, 3], index=[0] * 5) + + tm.assert_series_equal(expected, g.cumcount()) + tm.assert_series_equal(expected, sg.cumcount()) + + def test_ngroup(self): + df = DataFrame({"A": list("aaaba")}) + g = df.groupby("A") + sg = g.A + + expected = Series([0, 0, 0, 1, 0]) + + tm.assert_series_equal(expected, g.ngroup()) + tm.assert_series_equal(expected, sg.ngroup()) + + def test_ngroup_distinct(self): + df = DataFrame({"A": list("abcde")}) + g = df.groupby("A") + sg = g.A + + expected = Series(range(5), dtype="int64") + + tm.assert_series_equal(expected, g.ngroup()) + tm.assert_series_equal(expected, sg.ngroup()) + + def test_ngroup_one_group(self): + df = DataFrame({"A": [0] * 5}) + g = df.groupby("A") + sg = g.A + + expected = Series([0] * 5) + + tm.assert_series_equal(expected, g.ngroup()) + tm.assert_series_equal(expected, sg.ngroup()) + + def test_ngroup_empty(self): + ge = DataFrame().groupby(level=0) + se = Series(dtype=object).groupby(level=0) + + # edge case, as this is usually considered float + e = Series(dtype="int64") + + tm.assert_series_equal(e, ge.ngroup()) + tm.assert_series_equal(e, se.ngroup()) + + def test_ngroup_series_matches_frame(self): + df = DataFrame({"A": list("aaaba")}) + s = Series(list("aaaba")) + + tm.assert_series_equal(df.groupby(s).ngroup(), s.groupby(s).ngroup()) + + def test_ngroup_dupe_index(self): + df = DataFrame({"A": list("aaaba")}, index=[0] * 5) + g = df.groupby("A") + sg = g.A + + expected = Series([0, 0, 0, 1, 0], index=[0] * 5) + + tm.assert_series_equal(expected, g.ngroup()) + tm.assert_series_equal(expected, sg.ngroup()) + + def test_ngroup_mi(self): + mi = MultiIndex.from_tuples([[0, 1], [1, 2], [2, 2], [2, 2], [1, 0]]) + df = DataFrame({"A": list("aaaba")}, index=mi) + g = df.groupby("A") + sg = g.A + expected = Series([0, 0, 0, 1, 0], index=mi) + + tm.assert_series_equal(expected, g.ngroup()) + tm.assert_series_equal(expected, sg.ngroup()) + + def test_ngroup_groupby_not_col(self): + df = DataFrame({"A": list("aaaba")}, index=[0] * 5) + g = df.groupby([0, 0, 0, 1, 0]) + sg = g.A + + expected = Series([0, 0, 0, 1, 0], index=[0] * 5) + + tm.assert_series_equal(expected, g.ngroup()) + tm.assert_series_equal(expected, sg.ngroup()) + + def test_ngroup_descending(self): + df = DataFrame(["a", "a", "b", "a", "b"], columns=["A"]) + g = df.groupby(["A"]) + + ascending = Series([0, 0, 1, 0, 1]) + descending = Series([1, 1, 0, 1, 0]) + + tm.assert_series_equal(descending, (g.ngroups - 1) - ascending) + tm.assert_series_equal(ascending, g.ngroup(ascending=True)) + tm.assert_series_equal(descending, g.ngroup(ascending=False)) + + def test_ngroup_matches_cumcount(self): + # verify one manually-worked out case works + df = DataFrame( + [["a", "x"], ["a", "y"], ["b", "x"], ["a", "x"], ["b", "y"]], + columns=["A", "X"], + ) + g = df.groupby(["A", "X"]) + g_ngroup = g.ngroup() + g_cumcount = g.cumcount() + expected_ngroup = Series([0, 1, 2, 0, 3]) + expected_cumcount = Series([0, 0, 0, 1, 0]) + + tm.assert_series_equal(g_ngroup, expected_ngroup) + tm.assert_series_equal(g_cumcount, expected_cumcount) + + def test_ngroup_cumcount_pair(self): + # brute force comparison for all small series + for p in product(range(3), repeat=4): + df = DataFrame({"a": p}) + g = df.groupby(["a"]) + + order = sorted(set(p)) + ngroupd = [order.index(val) for val in p] + cumcounted = [p[:i].count(val) for i, val in enumerate(p)] + + tm.assert_series_equal(g.ngroup(), Series(ngroupd)) + tm.assert_series_equal(g.cumcount(), Series(cumcounted)) + + def test_ngroup_respects_groupby_order(self, sort): + df = DataFrame({"a": np.random.default_rng(2).choice(list("abcdef"), 100)}) + g = df.groupby("a", sort=sort) + df["group_id"] = -1 + df["group_index"] = -1 + + for i, (_, group) in enumerate(g): + df.loc[group.index, "group_id"] = i + for j, ind in enumerate(group.index): + df.loc[ind, "group_index"] = j + + tm.assert_series_equal(Series(df["group_id"].values), g.ngroup()) + tm.assert_series_equal(Series(df["group_index"].values), g.cumcount()) + + @pytest.mark.parametrize( + "datetimelike", + [ + [Timestamp(f"2016-05-{i:02d} 20:09:25+00:00") for i in range(1, 4)], + [Timestamp(f"2016-05-{i:02d} 20:09:25") for i in range(1, 4)], + [Timestamp(f"2016-05-{i:02d} 20:09:25", tz="UTC") for i in range(1, 4)], + [Timedelta(x, unit="h") for x in range(1, 4)], + [Period(freq="2W", year=2017, month=x) for x in range(1, 4)], + ], + ) + def test_count_with_datetimelike(self, datetimelike): + # test for #13393, where DataframeGroupBy.count() fails + # when counting a datetimelike column. + + df = DataFrame({"x": ["a", "a", "b"], "y": datetimelike}) + res = df.groupby("x").count() + expected = DataFrame({"y": [2, 1]}, index=["a", "b"]) + expected.index.name = "x" + tm.assert_frame_equal(expected, res) + + def test_count_with_only_nans_in_first_group(self): + # GH21956 + df = DataFrame({"A": [np.nan, np.nan], "B": ["a", "b"], "C": [1, 2]}) + result = df.groupby(["A", "B"]).C.count() + mi = MultiIndex(levels=[[], ["a", "b"]], codes=[[], []], names=["A", "B"]) + expected = Series([], index=mi, dtype=np.int64, name="C") + tm.assert_series_equal(result, expected, check_index_type=False) + + def test_count_groupby_column_with_nan_in_groupby_column(self): + # https://github.com/pandas-dev/pandas/issues/32841 + df = DataFrame({"A": [1, 1, 1, 1, 1], "B": [5, 4, np.nan, 3, 0]}) + res = df.groupby(["B"]).count() + expected = DataFrame( + index=Index([0.0, 3.0, 4.0, 5.0], name="B"), data={"A": [1, 1, 1, 1]} + ) + tm.assert_frame_equal(expected, res) + + def test_groupby_count_dateparseerror(self): + dr = date_range(start="1/1/2012", freq="5min", periods=10) + + # BAD Example, datetimes first + ser = Series(np.arange(10), index=[dr, np.arange(10)]) + grouped = ser.groupby(lambda x: x[1] % 2 == 0) + result = grouped.count() + + ser = Series(np.arange(10), index=[np.arange(10), dr]) + grouped = ser.groupby(lambda x: x[0] % 2 == 0) + expected = grouped.count() + + tm.assert_series_equal(result, expected) + + +def test_groupby_timedelta_cython_count(): + df = DataFrame( + {"g": list("ab" * 2), "delta": np.arange(4).astype("timedelta64[ns]")} + ) + expected = Series([2, 2], index=Index(["a", "b"], name="g"), name="delta") + result = df.groupby("g").delta.count() + tm.assert_series_equal(expected, result) + + +def test_count(): + n = 1 << 15 + dr = date_range("2015-08-30", periods=n // 10, freq="min") + + df = DataFrame( + { + "1st": np.random.default_rng(2).choice(list(ascii_lowercase), n), + "2nd": np.random.default_rng(2).integers(0, 5, n), + "3rd": np.random.default_rng(2).standard_normal(n).round(3), + "4th": np.random.default_rng(2).integers(-10, 10, n), + "5th": np.random.default_rng(2).choice(dr, n), + "6th": np.random.default_rng(2).standard_normal(n).round(3), + "7th": np.random.default_rng(2).standard_normal(n).round(3), + "8th": np.random.default_rng(2).choice(dr, n) + - np.random.default_rng(2).choice(dr, 1), + "9th": np.random.default_rng(2).choice(list(ascii_lowercase), n), + } + ) + + for col in df.columns.drop(["1st", "2nd", "4th"]): + df.loc[np.random.default_rng(2).choice(n, n // 10), col] = np.nan + + df["9th"] = df["9th"].astype("category") + + for key in ["1st", "2nd", ["1st", "2nd"]]: + left = df.groupby(key).count() + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + right = df.groupby(key).apply(DataFrame.count).drop(key, axis=1) + tm.assert_frame_equal(left, right) + + +def test_count_non_nulls(): + # GH#5610 + # count counts non-nulls + df = DataFrame( + [[1, 2, "foo"], [1, np.nan, "bar"], [3, np.nan, np.nan]], + columns=["A", "B", "C"], + ) + + count_as = df.groupby("A").count() + count_not_as = df.groupby("A", as_index=False).count() + + expected = DataFrame([[1, 2], [0, 0]], columns=["B", "C"], index=[1, 3]) + expected.index.name = "A" + tm.assert_frame_equal(count_not_as, expected.reset_index()) + tm.assert_frame_equal(count_as, expected) + + count_B = df.groupby("A")["B"].count() + tm.assert_series_equal(count_B, expected["B"]) + + +def test_count_object(): + df = DataFrame({"a": ["a"] * 3 + ["b"] * 3, "c": [2] * 3 + [3] * 3}) + result = df.groupby("c").a.count() + expected = Series([3, 3], index=Index([2, 3], name="c"), name="a") + tm.assert_series_equal(result, expected) + + df = DataFrame({"a": ["a", np.nan, np.nan] + ["b"] * 3, "c": [2] * 3 + [3] * 3}) + result = df.groupby("c").a.count() + expected = Series([1, 3], index=Index([2, 3], name="c"), name="a") + tm.assert_series_equal(result, expected) + + +def test_count_cross_type(): + # GH8169 + # Set float64 dtype to avoid upcast when setting nan below + vals = np.hstack( + ( + np.random.default_rng(2).integers(0, 5, (100, 2)), + np.random.default_rng(2).integers(0, 2, (100, 2)), + ) + ).astype("float64") + + df = DataFrame(vals, columns=["a", "b", "c", "d"]) + df[df == 2] = np.nan + expected = df.groupby(["c", "d"]).count() + + for t in ["float32", "object"]: + df["a"] = df["a"].astype(t) + df["b"] = df["b"].astype(t) + result = df.groupby(["c", "d"]).count() + tm.assert_frame_equal(result, expected) + + +def test_lower_int_prec_count(): + df = DataFrame( + { + "a": np.array([0, 1, 2, 100], np.int8), + "b": np.array([1, 2, 3, 6], np.uint32), + "c": np.array([4, 5, 6, 8], np.int16), + "grp": list("ab" * 2), + } + ) + result = df.groupby("grp").count() + expected = DataFrame( + {"a": [2, 2], "b": [2, 2], "c": [2, 2]}, index=Index(list("ab"), name="grp") + ) + tm.assert_frame_equal(result, expected) + + +def test_count_uses_size_on_exception(): + class RaisingObjectException(Exception): + pass + + class RaisingObject: + def __init__(self, msg="I will raise inside Cython") -> None: + super().__init__() + self.msg = msg + + def __eq__(self, other): + # gets called in Cython to check that raising calls the method + raise RaisingObjectException(self.msg) + + df = DataFrame({"a": [RaisingObject() for _ in range(4)], "grp": list("ab" * 2)}) + result = df.groupby("grp").count() + expected = DataFrame({"a": [2, 2]}, index=Index(list("ab"), name="grp")) + tm.assert_frame_equal(result, expected) + + +def test_count_arrow_string_array(any_string_dtype): + # GH#54751 + pytest.importorskip("pyarrow") + df = DataFrame( + {"a": [1, 2, 3], "b": Series(["a", "b", "a"], dtype=any_string_dtype)} + ) + result = df.groupby("a").count() + expected = DataFrame({"b": 1}, index=Index([1, 2, 3], name="a")) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_cumulative.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_cumulative.py new file mode 100644 index 0000000000000000000000000000000000000000..1bdbef6d50c4c23db86060493dcd4f6df4bc4728 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_cumulative.py @@ -0,0 +1,319 @@ +import numpy as np +import pytest + +from pandas.errors import UnsupportedFunctionCall +import pandas.util._test_decorators as td + +import pandas as pd +from pandas import ( + DataFrame, + Series, +) +import pandas._testing as tm + + +@pytest.fixture( + params=[np.int32, np.int64, np.float32, np.float64, "Int64", "Float64"], + ids=["np.int32", "np.int64", "np.float32", "np.float64", "Int64", "Float64"], +) +def dtypes_for_minmax(request): + """ + Fixture of dtypes with min and max values used for testing + cummin and cummax + """ + dtype = request.param + + np_type = dtype + if dtype == "Int64": + np_type = np.int64 + elif dtype == "Float64": + np_type = np.float64 + + min_val = ( + np.iinfo(np_type).min + if np.dtype(np_type).kind == "i" + else np.finfo(np_type).min + ) + max_val = ( + np.iinfo(np_type).max + if np.dtype(np_type).kind == "i" + else np.finfo(np_type).max + ) + + return (dtype, min_val, max_val) + + +def test_groupby_cumprod(): + # GH 4095 + df = DataFrame({"key": ["b"] * 10, "value": 2}) + + actual = df.groupby("key")["value"].cumprod() + expected = df.groupby("key", group_keys=False)["value"].apply(lambda x: x.cumprod()) + expected.name = "value" + tm.assert_series_equal(actual, expected) + + df = DataFrame({"key": ["b"] * 100, "value": 2}) + df["value"] = df["value"].astype(float) + actual = df.groupby("key")["value"].cumprod() + expected = df.groupby("key", group_keys=False)["value"].apply(lambda x: x.cumprod()) + expected.name = "value" + tm.assert_series_equal(actual, expected) + + +@pytest.mark.skip_ubsan +def test_groupby_cumprod_overflow(): + # GH#37493 if we overflow we return garbage consistent with numpy + df = DataFrame({"key": ["b"] * 4, "value": 100_000}) + actual = df.groupby("key")["value"].cumprod() + expected = Series( + [100_000, 10_000_000_000, 1_000_000_000_000_000, 7766279631452241920], + name="value", + ) + tm.assert_series_equal(actual, expected) + + numpy_result = df.groupby("key", group_keys=False)["value"].apply( + lambda x: x.cumprod() + ) + numpy_result.name = "value" + tm.assert_series_equal(actual, numpy_result) + + +def test_groupby_cumprod_nan_influences_other_columns(): + # GH#48064 + df = DataFrame( + { + "a": 1, + "b": [1, np.nan, 2], + "c": [1, 2, 3.0], + } + ) + result = df.groupby("a").cumprod(numeric_only=True, skipna=False) + expected = DataFrame({"b": [1, np.nan, np.nan], "c": [1, 2, 6.0]}) + tm.assert_frame_equal(result, expected) + + +def test_cummin(dtypes_for_minmax): + dtype = dtypes_for_minmax[0] + min_val = dtypes_for_minmax[1] + + # GH 15048 + base_df = DataFrame({"A": [1, 1, 1, 1, 2, 2, 2, 2], "B": [3, 4, 3, 2, 2, 3, 2, 1]}) + expected_mins = [3, 3, 3, 2, 2, 2, 2, 1] + + df = base_df.astype(dtype) + + expected = DataFrame({"B": expected_mins}).astype(dtype) + result = df.groupby("A").cummin() + tm.assert_frame_equal(result, expected) + result = df.groupby("A", group_keys=False).B.apply(lambda x: x.cummin()).to_frame() + tm.assert_frame_equal(result, expected) + + # Test w/ min value for dtype + df.loc[[2, 6], "B"] = min_val + df.loc[[1, 5], "B"] = min_val + 1 + expected.loc[[2, 3, 6, 7], "B"] = min_val + expected.loc[[1, 5], "B"] = min_val + 1 # should not be rounded to min_val + result = df.groupby("A").cummin() + tm.assert_frame_equal(result, expected, check_exact=True) + expected = ( + df.groupby("A", group_keys=False).B.apply(lambda x: x.cummin()).to_frame() + ) + tm.assert_frame_equal(result, expected, check_exact=True) + + # Test nan in some values + # Explicit cast to float to avoid implicit cast when setting nan + base_df = base_df.astype({"B": "float"}) + base_df.loc[[0, 2, 4, 6], "B"] = np.nan + expected = DataFrame({"B": [np.nan, 4, np.nan, 2, np.nan, 3, np.nan, 1]}) + result = base_df.groupby("A").cummin() + tm.assert_frame_equal(result, expected) + expected = ( + base_df.groupby("A", group_keys=False).B.apply(lambda x: x.cummin()).to_frame() + ) + tm.assert_frame_equal(result, expected) + + # GH 15561 + df = DataFrame({"a": [1], "b": pd.to_datetime(["2001"])}) + expected = Series(pd.to_datetime("2001"), index=[0], name="b") + + result = df.groupby("a")["b"].cummin() + tm.assert_series_equal(expected, result) + + # GH 15635 + df = DataFrame({"a": [1, 2, 1], "b": [1, 2, 2]}) + result = df.groupby("a").b.cummin() + expected = Series([1, 2, 1], name="b") + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("method", ["cummin", "cummax"]) +@pytest.mark.parametrize("dtype", ["UInt64", "Int64", "Float64", "float", "boolean"]) +def test_cummin_max_all_nan_column(method, dtype): + base_df = DataFrame({"A": [1, 1, 1, 1, 2, 2, 2, 2], "B": [np.nan] * 8}) + base_df["B"] = base_df["B"].astype(dtype) + grouped = base_df.groupby("A") + + expected = DataFrame({"B": [np.nan] * 8}, dtype=dtype) + result = getattr(grouped, method)() + tm.assert_frame_equal(expected, result) + + result = getattr(grouped["B"], method)().to_frame() + tm.assert_frame_equal(expected, result) + + +def test_cummax(dtypes_for_minmax): + dtype = dtypes_for_minmax[0] + max_val = dtypes_for_minmax[2] + + # GH 15048 + base_df = DataFrame({"A": [1, 1, 1, 1, 2, 2, 2, 2], "B": [3, 4, 3, 2, 2, 3, 2, 1]}) + expected_maxs = [3, 4, 4, 4, 2, 3, 3, 3] + + df = base_df.astype(dtype) + + expected = DataFrame({"B": expected_maxs}).astype(dtype) + result = df.groupby("A").cummax() + tm.assert_frame_equal(result, expected) + result = df.groupby("A", group_keys=False).B.apply(lambda x: x.cummax()).to_frame() + tm.assert_frame_equal(result, expected) + + # Test w/ max value for dtype + df.loc[[2, 6], "B"] = max_val + expected.loc[[2, 3, 6, 7], "B"] = max_val + result = df.groupby("A").cummax() + tm.assert_frame_equal(result, expected) + expected = ( + df.groupby("A", group_keys=False).B.apply(lambda x: x.cummax()).to_frame() + ) + tm.assert_frame_equal(result, expected) + + # Test nan in some values + # Explicit cast to float to avoid implicit cast when setting nan + base_df = base_df.astype({"B": "float"}) + base_df.loc[[0, 2, 4, 6], "B"] = np.nan + expected = DataFrame({"B": [np.nan, 4, np.nan, 4, np.nan, 3, np.nan, 3]}) + result = base_df.groupby("A").cummax() + tm.assert_frame_equal(result, expected) + expected = ( + base_df.groupby("A", group_keys=False).B.apply(lambda x: x.cummax()).to_frame() + ) + tm.assert_frame_equal(result, expected) + + # GH 15561 + df = DataFrame({"a": [1], "b": pd.to_datetime(["2001"])}) + expected = Series(pd.to_datetime("2001"), index=[0], name="b") + + result = df.groupby("a")["b"].cummax() + tm.assert_series_equal(expected, result) + + # GH 15635 + df = DataFrame({"a": [1, 2, 1], "b": [2, 1, 1]}) + result = df.groupby("a").b.cummax() + expected = Series([2, 1, 2], name="b") + tm.assert_series_equal(result, expected) + + +def test_cummax_i8_at_implementation_bound(): + # the minimum value used to be treated as NPY_NAT+1 instead of NPY_NAT + # for int64 dtype GH#46382 + ser = Series([pd.NaT._value + n for n in range(5)]) + df = DataFrame({"A": 1, "B": ser, "C": ser._values.view("M8[ns]")}) + gb = df.groupby("A") + + res = gb.cummax() + exp = df[["B", "C"]] + tm.assert_frame_equal(res, exp) + + +@pytest.mark.parametrize("method", ["cummin", "cummax"]) +@pytest.mark.parametrize("dtype", ["float", "Int64", "Float64"]) +@pytest.mark.parametrize( + "groups,expected_data", + [ + ([1, 1, 1], [1, None, None]), + ([1, 2, 3], [1, None, 2]), + ([1, 3, 3], [1, None, None]), + ], +) +def test_cummin_max_skipna(method, dtype, groups, expected_data): + # GH-34047 + df = DataFrame({"a": Series([1, None, 2], dtype=dtype)}) + orig = df.copy() + gb = df.groupby(groups)["a"] + + result = getattr(gb, method)(skipna=False) + expected = Series(expected_data, dtype=dtype, name="a") + + # check we didn't accidentally alter df + tm.assert_frame_equal(df, orig) + + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("method", ["cummin", "cummax"]) +def test_cummin_max_skipna_multiple_cols(method): + # Ensure missing value in "a" doesn't cause "b" to be nan-filled + df = DataFrame({"a": [np.nan, 2.0, 2.0], "b": [2.0, 2.0, 2.0]}) + gb = df.groupby([1, 1, 1])[["a", "b"]] + + result = getattr(gb, method)(skipna=False) + expected = DataFrame({"a": [np.nan, np.nan, np.nan], "b": [2.0, 2.0, 2.0]}) + + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("func", ["cumprod", "cumsum"]) +def test_numpy_compat(func): + # see gh-12811 + df = DataFrame({"A": [1, 2, 1], "B": [1, 2, 3]}) + g = df.groupby("A") + + msg = "numpy operations are not valid with groupby" + + with pytest.raises(UnsupportedFunctionCall, match=msg): + getattr(g, func)(1, 2, 3) + with pytest.raises(UnsupportedFunctionCall, match=msg): + getattr(g, func)(foo=1) + + +@td.skip_if_32bit +@pytest.mark.parametrize("method", ["cummin", "cummax"]) +@pytest.mark.parametrize( + "dtype,val", [("UInt64", np.iinfo("uint64").max), ("Int64", 2**53 + 1)] +) +def test_nullable_int_not_cast_as_float(method, dtype, val): + data = [val, pd.NA] + df = DataFrame({"grp": [1, 1], "b": data}, dtype=dtype) + grouped = df.groupby("grp") + + result = grouped.transform(method) + expected = DataFrame({"b": data}, dtype=dtype) + + tm.assert_frame_equal(result, expected) + + +def test_cython_api2(): + # this takes the fast apply path + + # cumsum (GH5614) + df = DataFrame([[1, 2, np.nan], [1, np.nan, 9], [3, 4, 9]], columns=["A", "B", "C"]) + expected = DataFrame([[2, np.nan], [np.nan, 9], [4, 9]], columns=["B", "C"]) + result = df.groupby("A").cumsum() + tm.assert_frame_equal(result, expected) + + # GH 5755 - cumsum is a transformer and should ignore as_index + result = df.groupby("A", as_index=False).cumsum() + tm.assert_frame_equal(result, expected) + + # GH 13994 + msg = "DataFrameGroupBy.cumsum with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("A").cumsum(axis=1) + expected = df.cumsum(axis=1) + tm.assert_frame_equal(result, expected) + + msg = "DataFrameGroupBy.cumprod with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("A").cumprod(axis=1) + expected = df.cumprod(axis=1) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_filters.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_filters.py new file mode 100644 index 0000000000000000000000000000000000000000..309c4b7b57e84f68e13ed974790c87c16244aae7 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_filters.py @@ -0,0 +1,636 @@ +from string import ascii_lowercase + +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + DataFrame, + Series, + Timestamp, +) +import pandas._testing as tm + + +def test_filter_series(): + s = Series([1, 3, 20, 5, 22, 24, 7]) + expected_odd = Series([1, 3, 5, 7], index=[0, 1, 3, 6]) + expected_even = Series([20, 22, 24], index=[2, 4, 5]) + grouper = s.apply(lambda x: x % 2) + grouped = s.groupby(grouper) + tm.assert_series_equal(grouped.filter(lambda x: x.mean() < 10), expected_odd) + tm.assert_series_equal(grouped.filter(lambda x: x.mean() > 10), expected_even) + # Test dropna=False. + tm.assert_series_equal( + grouped.filter(lambda x: x.mean() < 10, dropna=False), + expected_odd.reindex(s.index), + ) + tm.assert_series_equal( + grouped.filter(lambda x: x.mean() > 10, dropna=False), + expected_even.reindex(s.index), + ) + + +def test_filter_single_column_df(): + df = DataFrame([1, 3, 20, 5, 22, 24, 7]) + expected_odd = DataFrame([1, 3, 5, 7], index=[0, 1, 3, 6]) + expected_even = DataFrame([20, 22, 24], index=[2, 4, 5]) + grouper = df[0].apply(lambda x: x % 2) + grouped = df.groupby(grouper) + tm.assert_frame_equal(grouped.filter(lambda x: x.mean() < 10), expected_odd) + tm.assert_frame_equal(grouped.filter(lambda x: x.mean() > 10), expected_even) + # Test dropna=False. + tm.assert_frame_equal( + grouped.filter(lambda x: x.mean() < 10, dropna=False), + expected_odd.reindex(df.index), + ) + tm.assert_frame_equal( + grouped.filter(lambda x: x.mean() > 10, dropna=False), + expected_even.reindex(df.index), + ) + + +def test_filter_multi_column_df(): + df = DataFrame({"A": [1, 12, 12, 1], "B": [1, 1, 1, 1]}) + grouper = df["A"].apply(lambda x: x % 2) + grouped = df.groupby(grouper) + expected = DataFrame({"A": [12, 12], "B": [1, 1]}, index=[1, 2]) + tm.assert_frame_equal( + grouped.filter(lambda x: x["A"].sum() - x["B"].sum() > 10), expected + ) + + +def test_filter_mixed_df(): + df = DataFrame({"A": [1, 12, 12, 1], "B": "a b c d".split()}) + grouper = df["A"].apply(lambda x: x % 2) + grouped = df.groupby(grouper) + expected = DataFrame({"A": [12, 12], "B": ["b", "c"]}, index=[1, 2]) + tm.assert_frame_equal(grouped.filter(lambda x: x["A"].sum() > 10), expected) + + +def test_filter_out_all_groups(): + s = Series([1, 3, 20, 5, 22, 24, 7]) + grouper = s.apply(lambda x: x % 2) + grouped = s.groupby(grouper) + tm.assert_series_equal(grouped.filter(lambda x: x.mean() > 1000), s[[]]) + df = DataFrame({"A": [1, 12, 12, 1], "B": "a b c d".split()}) + grouper = df["A"].apply(lambda x: x % 2) + grouped = df.groupby(grouper) + tm.assert_frame_equal(grouped.filter(lambda x: x["A"].sum() > 1000), df.loc[[]]) + + +def test_filter_out_no_groups(): + s = Series([1, 3, 20, 5, 22, 24, 7]) + grouper = s.apply(lambda x: x % 2) + grouped = s.groupby(grouper) + filtered = grouped.filter(lambda x: x.mean() > 0) + tm.assert_series_equal(filtered, s) + df = DataFrame({"A": [1, 12, 12, 1], "B": "a b c d".split()}) + grouper = df["A"].apply(lambda x: x % 2) + grouped = df.groupby(grouper) + filtered = grouped.filter(lambda x: x["A"].mean() > 0) + tm.assert_frame_equal(filtered, df) + + +def test_filter_out_all_groups_in_df(): + # GH12768 + df = DataFrame({"a": [1, 1, 2], "b": [1, 2, 0]}) + res = df.groupby("a") + res = res.filter(lambda x: x["b"].sum() > 5, dropna=False) + expected = DataFrame({"a": [np.nan] * 3, "b": [np.nan] * 3}) + tm.assert_frame_equal(expected, res) + + df = DataFrame({"a": [1, 1, 2], "b": [1, 2, 0]}) + res = df.groupby("a") + res = res.filter(lambda x: x["b"].sum() > 5, dropna=True) + expected = DataFrame({"a": [], "b": []}, dtype="int64") + tm.assert_frame_equal(expected, res) + + +def test_filter_condition_raises(): + def raise_if_sum_is_zero(x): + if x.sum() == 0: + raise ValueError + return x.sum() > 0 + + s = Series([-1, 0, 1, 2]) + grouper = s.apply(lambda x: x % 2) + grouped = s.groupby(grouper) + msg = "the filter must return a boolean result" + with pytest.raises(TypeError, match=msg): + grouped.filter(raise_if_sum_is_zero) + + +def test_filter_with_axis_in_groupby(): + # issue 11041 + index = pd.MultiIndex.from_product([range(10), [0, 1]]) + data = DataFrame(np.arange(100).reshape(-1, 20), columns=index, dtype="int64") + + msg = "DataFrame.groupby with axis=1" + with tm.assert_produces_warning(FutureWarning, match=msg): + gb = data.groupby(level=0, axis=1) + result = gb.filter(lambda x: x.iloc[0, 0] > 10) + expected = data.iloc[:, 12:20] + tm.assert_frame_equal(result, expected) + + +def test_filter_bad_shapes(): + df = DataFrame({"A": np.arange(8), "B": list("aabbbbcc"), "C": np.arange(8)}) + s = df["B"] + g_df = df.groupby("B") + g_s = s.groupby(s) + + f = lambda x: x + msg = "filter function returned a DataFrame, but expected a scalar bool" + with pytest.raises(TypeError, match=msg): + g_df.filter(f) + msg = "the filter must return a boolean result" + with pytest.raises(TypeError, match=msg): + g_s.filter(f) + + f = lambda x: x == 1 + msg = "filter function returned a DataFrame, but expected a scalar bool" + with pytest.raises(TypeError, match=msg): + g_df.filter(f) + msg = "the filter must return a boolean result" + with pytest.raises(TypeError, match=msg): + g_s.filter(f) + + f = lambda x: np.outer(x, x) + msg = "can't multiply sequence by non-int of type 'str'" + with pytest.raises(TypeError, match=msg): + g_df.filter(f) + msg = "the filter must return a boolean result" + with pytest.raises(TypeError, match=msg): + g_s.filter(f) + + +def test_filter_nan_is_false(): + df = DataFrame({"A": np.arange(8), "B": list("aabbbbcc"), "C": np.arange(8)}) + s = df["B"] + g_df = df.groupby(df["B"]) + g_s = s.groupby(s) + + f = lambda x: np.nan + tm.assert_frame_equal(g_df.filter(f), df.loc[[]]) + tm.assert_series_equal(g_s.filter(f), s[[]]) + + +def test_filter_pdna_is_false(): + # in particular, dont raise in filter trying to call bool(pd.NA) + df = DataFrame({"A": np.arange(8), "B": list("aabbbbcc"), "C": np.arange(8)}) + ser = df["B"] + g_df = df.groupby(df["B"]) + g_s = ser.groupby(ser) + + func = lambda x: pd.NA + res = g_df.filter(func) + tm.assert_frame_equal(res, df.loc[[]]) + res = g_s.filter(func) + tm.assert_series_equal(res, ser[[]]) + + +def test_filter_against_workaround_ints(): + # Series of ints + s = Series(np.random.default_rng(2).integers(0, 100, 100)) + grouper = s.apply(lambda x: np.round(x, -1)) + grouped = s.groupby(grouper) + f = lambda x: x.mean() > 10 + + old_way = s[grouped.transform(f).astype("bool")] + new_way = grouped.filter(f) + tm.assert_series_equal(new_way.sort_values(), old_way.sort_values()) + + +def test_filter_against_workaround_floats(): + # Series of floats + s = 100 * Series(np.random.default_rng(2).random(100)) + grouper = s.apply(lambda x: np.round(x, -1)) + grouped = s.groupby(grouper) + f = lambda x: x.mean() > 10 + old_way = s[grouped.transform(f).astype("bool")] + new_way = grouped.filter(f) + tm.assert_series_equal(new_way.sort_values(), old_way.sort_values()) + + +def test_filter_against_workaround_dataframe(): + # Set up DataFrame of ints, floats, strings. + letters = np.array(list(ascii_lowercase)) + N = 100 + random_letters = letters.take( + np.random.default_rng(2).integers(0, 26, N, dtype=int) + ) + df = DataFrame( + { + "ints": Series(np.random.default_rng(2).integers(0, 100, N)), + "floats": N / 10 * Series(np.random.default_rng(2).random(N)), + "letters": Series(random_letters), + } + ) + + # Group by ints; filter on floats. + grouped = df.groupby("ints") + old_way = df[grouped.floats.transform(lambda x: x.mean() > N / 20).astype("bool")] + new_way = grouped.filter(lambda x: x["floats"].mean() > N / 20) + tm.assert_frame_equal(new_way, old_way) + + # Group by floats (rounded); filter on strings. + grouper = df.floats.apply(lambda x: np.round(x, -1)) + grouped = df.groupby(grouper) + old_way = df[grouped.letters.transform(lambda x: len(x) < N / 10).astype("bool")] + new_way = grouped.filter(lambda x: len(x.letters) < N / 10) + tm.assert_frame_equal(new_way, old_way) + + # Group by strings; filter on ints. + grouped = df.groupby("letters") + old_way = df[grouped.ints.transform(lambda x: x.mean() > N / 20).astype("bool")] + new_way = grouped.filter(lambda x: x["ints"].mean() > N / 20) + tm.assert_frame_equal(new_way, old_way) + + +def test_filter_using_len(): + # BUG GH4447 + df = DataFrame({"A": np.arange(8), "B": list("aabbbbcc"), "C": np.arange(8)}) + grouped = df.groupby("B") + actual = grouped.filter(lambda x: len(x) > 2) + expected = DataFrame( + {"A": np.arange(2, 6), "B": list("bbbb"), "C": np.arange(2, 6)}, + index=np.arange(2, 6, dtype=np.int64), + ) + tm.assert_frame_equal(actual, expected) + + actual = grouped.filter(lambda x: len(x) > 4) + expected = df.loc[[]] + tm.assert_frame_equal(actual, expected) + + # Series have always worked properly, but we'll test anyway. + s = df["B"] + grouped = s.groupby(s) + actual = grouped.filter(lambda x: len(x) > 2) + expected = Series(4 * ["b"], index=np.arange(2, 6, dtype=np.int64), name="B") + tm.assert_series_equal(actual, expected) + + actual = grouped.filter(lambda x: len(x) > 4) + expected = s[[]] + tm.assert_series_equal(actual, expected) + + +def test_filter_maintains_ordering(): + # Simple case: index is sequential. #4621 + df = DataFrame( + {"pid": [1, 1, 1, 2, 2, 3, 3, 3], "tag": [23, 45, 62, 24, 45, 34, 25, 62]} + ) + s = df["pid"] + grouped = df.groupby("tag") + actual = grouped.filter(lambda x: len(x) > 1) + expected = df.iloc[[1, 2, 4, 7]] + tm.assert_frame_equal(actual, expected) + + grouped = s.groupby(df["tag"]) + actual = grouped.filter(lambda x: len(x) > 1) + expected = s.iloc[[1, 2, 4, 7]] + tm.assert_series_equal(actual, expected) + + # Now index is sequentially decreasing. + df.index = np.arange(len(df) - 1, -1, -1) + s = df["pid"] + grouped = df.groupby("tag") + actual = grouped.filter(lambda x: len(x) > 1) + expected = df.iloc[[1, 2, 4, 7]] + tm.assert_frame_equal(actual, expected) + + grouped = s.groupby(df["tag"]) + actual = grouped.filter(lambda x: len(x) > 1) + expected = s.iloc[[1, 2, 4, 7]] + tm.assert_series_equal(actual, expected) + + # Index is shuffled. + SHUFFLED = [4, 6, 7, 2, 1, 0, 5, 3] + df.index = df.index[SHUFFLED] + s = df["pid"] + grouped = df.groupby("tag") + actual = grouped.filter(lambda x: len(x) > 1) + expected = df.iloc[[1, 2, 4, 7]] + tm.assert_frame_equal(actual, expected) + + grouped = s.groupby(df["tag"]) + actual = grouped.filter(lambda x: len(x) > 1) + expected = s.iloc[[1, 2, 4, 7]] + tm.assert_series_equal(actual, expected) + + +def test_filter_multiple_timestamp(): + # GH 10114 + df = DataFrame( + { + "A": np.arange(5, dtype="int64"), + "B": ["foo", "bar", "foo", "bar", "bar"], + "C": Timestamp("20130101"), + } + ) + + grouped = df.groupby(["B", "C"]) + + result = grouped["A"].filter(lambda x: True) + tm.assert_series_equal(df["A"], result) + + result = grouped["A"].transform(len) + expected = Series([2, 3, 2, 3, 3], name="A") + tm.assert_series_equal(result, expected) + + result = grouped.filter(lambda x: True) + tm.assert_frame_equal(df, result) + + result = grouped.transform("sum") + expected = DataFrame({"A": [2, 8, 2, 8, 8]}) + tm.assert_frame_equal(result, expected) + + result = grouped.transform(len) + expected = DataFrame({"A": [2, 3, 2, 3, 3]}) + tm.assert_frame_equal(result, expected) + + +def test_filter_and_transform_with_non_unique_int_index(): + # GH4620 + index = [1, 1, 1, 2, 1, 1, 0, 1] + df = DataFrame( + {"pid": [1, 1, 1, 2, 2, 3, 3, 3], "tag": [23, 45, 62, 24, 45, 34, 25, 62]}, + index=index, + ) + grouped_df = df.groupby("tag") + ser = df["pid"] + grouped_ser = ser.groupby(df["tag"]) + expected_indexes = [1, 2, 4, 7] + + # Filter DataFrame + actual = grouped_df.filter(lambda x: len(x) > 1) + expected = df.iloc[expected_indexes] + tm.assert_frame_equal(actual, expected) + + actual = grouped_df.filter(lambda x: len(x) > 1, dropna=False) + # Cast to avoid upcast when setting nan below + expected = df.copy().astype("float64") + expected.iloc[[0, 3, 5, 6]] = np.nan + tm.assert_frame_equal(actual, expected) + + # Filter Series + actual = grouped_ser.filter(lambda x: len(x) > 1) + expected = ser.take(expected_indexes) + tm.assert_series_equal(actual, expected) + + actual = grouped_ser.filter(lambda x: len(x) > 1, dropna=False) + expected = Series([np.nan, 1, 1, np.nan, 2, np.nan, np.nan, 3], index, name="pid") + # ^ made manually because this can get confusing! + tm.assert_series_equal(actual, expected) + + # Transform Series + actual = grouped_ser.transform(len) + expected = Series([1, 2, 2, 1, 2, 1, 1, 2], index, name="pid") + tm.assert_series_equal(actual, expected) + + # Transform (a column from) DataFrameGroupBy + actual = grouped_df.pid.transform(len) + tm.assert_series_equal(actual, expected) + + +def test_filter_and_transform_with_multiple_non_unique_int_index(): + # GH4620 + index = [1, 1, 1, 2, 0, 0, 0, 1] + df = DataFrame( + {"pid": [1, 1, 1, 2, 2, 3, 3, 3], "tag": [23, 45, 62, 24, 45, 34, 25, 62]}, + index=index, + ) + grouped_df = df.groupby("tag") + ser = df["pid"] + grouped_ser = ser.groupby(df["tag"]) + expected_indexes = [1, 2, 4, 7] + + # Filter DataFrame + actual = grouped_df.filter(lambda x: len(x) > 1) + expected = df.iloc[expected_indexes] + tm.assert_frame_equal(actual, expected) + + actual = grouped_df.filter(lambda x: len(x) > 1, dropna=False) + # Cast to avoid upcast when setting nan below + expected = df.copy().astype("float64") + expected.iloc[[0, 3, 5, 6]] = np.nan + tm.assert_frame_equal(actual, expected) + + # Filter Series + actual = grouped_ser.filter(lambda x: len(x) > 1) + expected = ser.take(expected_indexes) + tm.assert_series_equal(actual, expected) + + actual = grouped_ser.filter(lambda x: len(x) > 1, dropna=False) + expected = Series([np.nan, 1, 1, np.nan, 2, np.nan, np.nan, 3], index, name="pid") + # ^ made manually because this can get confusing! + tm.assert_series_equal(actual, expected) + + # Transform Series + actual = grouped_ser.transform(len) + expected = Series([1, 2, 2, 1, 2, 1, 1, 2], index, name="pid") + tm.assert_series_equal(actual, expected) + + # Transform (a column from) DataFrameGroupBy + actual = grouped_df.pid.transform(len) + tm.assert_series_equal(actual, expected) + + +def test_filter_and_transform_with_non_unique_float_index(): + # GH4620 + index = np.array([1, 1, 1, 2, 1, 1, 0, 1], dtype=float) + df = DataFrame( + {"pid": [1, 1, 1, 2, 2, 3, 3, 3], "tag": [23, 45, 62, 24, 45, 34, 25, 62]}, + index=index, + ) + grouped_df = df.groupby("tag") + ser = df["pid"] + grouped_ser = ser.groupby(df["tag"]) + expected_indexes = [1, 2, 4, 7] + + # Filter DataFrame + actual = grouped_df.filter(lambda x: len(x) > 1) + expected = df.iloc[expected_indexes] + tm.assert_frame_equal(actual, expected) + + actual = grouped_df.filter(lambda x: len(x) > 1, dropna=False) + # Cast to avoid upcast when setting nan below + expected = df.copy().astype("float64") + expected.iloc[[0, 3, 5, 6]] = np.nan + tm.assert_frame_equal(actual, expected) + + # Filter Series + actual = grouped_ser.filter(lambda x: len(x) > 1) + expected = ser.take(expected_indexes) + tm.assert_series_equal(actual, expected) + + actual = grouped_ser.filter(lambda x: len(x) > 1, dropna=False) + expected = Series([np.nan, 1, 1, np.nan, 2, np.nan, np.nan, 3], index, name="pid") + # ^ made manually because this can get confusing! + tm.assert_series_equal(actual, expected) + + # Transform Series + actual = grouped_ser.transform(len) + expected = Series([1, 2, 2, 1, 2, 1, 1, 2], index, name="pid") + tm.assert_series_equal(actual, expected) + + # Transform (a column from) DataFrameGroupBy + actual = grouped_df.pid.transform(len) + tm.assert_series_equal(actual, expected) + + +def test_filter_and_transform_with_non_unique_timestamp_index(): + # GH4620 + t0 = Timestamp("2013-09-30 00:05:00") + t1 = Timestamp("2013-10-30 00:05:00") + t2 = Timestamp("2013-11-30 00:05:00") + index = [t1, t1, t1, t2, t1, t1, t0, t1] + df = DataFrame( + {"pid": [1, 1, 1, 2, 2, 3, 3, 3], "tag": [23, 45, 62, 24, 45, 34, 25, 62]}, + index=index, + ) + grouped_df = df.groupby("tag") + ser = df["pid"] + grouped_ser = ser.groupby(df["tag"]) + expected_indexes = [1, 2, 4, 7] + + # Filter DataFrame + actual = grouped_df.filter(lambda x: len(x) > 1) + expected = df.iloc[expected_indexes] + tm.assert_frame_equal(actual, expected) + + actual = grouped_df.filter(lambda x: len(x) > 1, dropna=False) + # Cast to avoid upcast when setting nan below + expected = df.copy().astype("float64") + expected.iloc[[0, 3, 5, 6]] = np.nan + tm.assert_frame_equal(actual, expected) + + # Filter Series + actual = grouped_ser.filter(lambda x: len(x) > 1) + expected = ser.take(expected_indexes) + tm.assert_series_equal(actual, expected) + + actual = grouped_ser.filter(lambda x: len(x) > 1, dropna=False) + expected = Series([np.nan, 1, 1, np.nan, 2, np.nan, np.nan, 3], index, name="pid") + # ^ made manually because this can get confusing! + tm.assert_series_equal(actual, expected) + + # Transform Series + actual = grouped_ser.transform(len) + expected = Series([1, 2, 2, 1, 2, 1, 1, 2], index, name="pid") + tm.assert_series_equal(actual, expected) + + # Transform (a column from) DataFrameGroupBy + actual = grouped_df.pid.transform(len) + tm.assert_series_equal(actual, expected) + + +def test_filter_and_transform_with_non_unique_string_index(): + # GH4620 + index = list("bbbcbbab") + df = DataFrame( + {"pid": [1, 1, 1, 2, 2, 3, 3, 3], "tag": [23, 45, 62, 24, 45, 34, 25, 62]}, + index=index, + ) + grouped_df = df.groupby("tag") + ser = df["pid"] + grouped_ser = ser.groupby(df["tag"]) + expected_indexes = [1, 2, 4, 7] + + # Filter DataFrame + actual = grouped_df.filter(lambda x: len(x) > 1) + expected = df.iloc[expected_indexes] + tm.assert_frame_equal(actual, expected) + + actual = grouped_df.filter(lambda x: len(x) > 1, dropna=False) + # Cast to avoid upcast when setting nan below + expected = df.copy().astype("float64") + expected.iloc[[0, 3, 5, 6]] = np.nan + tm.assert_frame_equal(actual, expected) + + # Filter Series + actual = grouped_ser.filter(lambda x: len(x) > 1) + expected = ser.take(expected_indexes) + tm.assert_series_equal(actual, expected) + + actual = grouped_ser.filter(lambda x: len(x) > 1, dropna=False) + expected = Series([np.nan, 1, 1, np.nan, 2, np.nan, np.nan, 3], index, name="pid") + # ^ made manually because this can get confusing! + tm.assert_series_equal(actual, expected) + + # Transform Series + actual = grouped_ser.transform(len) + expected = Series([1, 2, 2, 1, 2, 1, 1, 2], index, name="pid") + tm.assert_series_equal(actual, expected) + + # Transform (a column from) DataFrameGroupBy + actual = grouped_df.pid.transform(len) + tm.assert_series_equal(actual, expected) + + +def test_filter_has_access_to_grouped_cols(): + df = DataFrame([[1, 2], [1, 3], [5, 6]], columns=["A", "B"]) + g = df.groupby("A") + # previously didn't have access to col A #???? + filt = g.filter(lambda x: x["A"].sum() == 2) + tm.assert_frame_equal(filt, df.iloc[[0, 1]]) + + +def test_filter_enforces_scalarness(): + df = DataFrame( + [ + ["best", "a", "x"], + ["worst", "b", "y"], + ["best", "c", "x"], + ["best", "d", "y"], + ["worst", "d", "y"], + ["worst", "d", "y"], + ["best", "d", "z"], + ], + columns=["a", "b", "c"], + ) + with pytest.raises(TypeError, match="filter function returned a.*"): + df.groupby("c").filter(lambda g: g["a"] == "best") + + +def test_filter_non_bool_raises(): + df = DataFrame( + [ + ["best", "a", 1], + ["worst", "b", 1], + ["best", "c", 1], + ["best", "d", 1], + ["worst", "d", 1], + ["worst", "d", 1], + ["best", "d", 1], + ], + columns=["a", "b", "c"], + ) + with pytest.raises(TypeError, match="filter function returned a.*"): + df.groupby("a").filter(lambda g: g.c.mean()) + + +def test_filter_dropna_with_empty_groups(): + # GH 10780 + data = Series(np.random.default_rng(2).random(9), index=np.repeat([1, 2, 3], 3)) + grouped = data.groupby(level=0) + result_false = grouped.filter(lambda x: x.mean() > 1, dropna=False) + expected_false = Series([np.nan] * 9, index=np.repeat([1, 2, 3], 3)) + tm.assert_series_equal(result_false, expected_false) + + result_true = grouped.filter(lambda x: x.mean() > 1, dropna=True) + expected_true = Series(index=pd.Index([], dtype=int), dtype=np.float64) + tm.assert_series_equal(result_true, expected_true) + + +def test_filter_consistent_result_before_after_agg_func(): + # GH 17091 + df = DataFrame({"data": range(6), "key": list("ABCABC")}) + grouper = df.groupby("key") + result = grouper.filter(lambda x: True) + expected = DataFrame({"data": range(6), "key": list("ABCABC")}) + tm.assert_frame_equal(result, expected) + + grouper.sum() + result = grouper.filter(lambda x: True) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_groupby.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_groupby.py new file mode 100644 index 0000000000000000000000000000000000000000..7ebecdafdc8aede3f2851b9d82f3de6669034719 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_groupby.py @@ -0,0 +1,3363 @@ +from datetime import datetime +import decimal +from decimal import Decimal +import re + +import numpy as np +import pytest + +from pandas.errors import ( + PerformanceWarning, + SpecificationError, +) +import pandas.util._test_decorators as td + +import pandas as pd +from pandas import ( + Categorical, + DataFrame, + Grouper, + Index, + Interval, + MultiIndex, + RangeIndex, + Series, + Timedelta, + Timestamp, + date_range, + to_datetime, +) +import pandas._testing as tm +from pandas.core.arrays import BooleanArray +import pandas.core.common as com + +pytestmark = pytest.mark.filterwarnings("ignore:Mean of empty slice:RuntimeWarning") + + +def test_repr(): + # GH18203 + result = repr(Grouper(key="A", level="B")) + expected = "Grouper(key='A', level='B', axis=0, sort=False, dropna=True)" + assert result == expected + + +def test_groupby_std_datetimelike(warn_copy_on_write): + # GH#48481 + tdi = pd.timedelta_range("1 Day", periods=10000) + ser = Series(tdi) + ser[::5] *= 2 # get different std for different groups + + df = ser.to_frame("A").copy() + + df["B"] = ser + Timestamp(0) + df["C"] = ser + Timestamp(0, tz="UTC") + df.iloc[-1] = pd.NaT # last group includes NaTs + + gb = df.groupby(list(range(5)) * 2000) + + result = gb.std() + + # Note: this does not _exactly_ match what we would get if we did + # [gb.get_group(i).std() for i in gb.groups] + # but it _does_ match the floating point error we get doing the + # same operation on int64 data xref GH#51332 + td1 = Timedelta("2887 days 11:21:02.326710176") + td4 = Timedelta("2886 days 00:42:34.664668096") + exp_ser = Series([td1 * 2, td1, td1, td1, td4], index=np.arange(5)) + expected = DataFrame({"A": exp_ser, "B": exp_ser, "C": exp_ser}) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("dtype", ["int64", "int32", "float64", "float32"]) +def test_basic_aggregations(dtype): + data = Series(np.arange(9) // 3, index=np.arange(9), dtype=dtype) + + index = np.arange(9) + np.random.default_rng(2).shuffle(index) + data = data.reindex(index) + + grouped = data.groupby(lambda x: x // 3, group_keys=False) + + for k, v in grouped: + assert len(v) == 3 + + msg = "using SeriesGroupBy.mean" + with tm.assert_produces_warning(FutureWarning, match=msg): + agged = grouped.aggregate(np.mean) + assert agged[1] == 1 + + msg = "using SeriesGroupBy.mean" + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = grouped.agg(np.mean) + tm.assert_series_equal(agged, expected) # shorthand + tm.assert_series_equal(agged, grouped.mean()) + result = grouped.sum() + msg = "using SeriesGroupBy.sum" + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = grouped.agg(np.sum) + tm.assert_series_equal(result, expected) + + expected = grouped.apply(lambda x: x * x.sum()) + transformed = grouped.transform(lambda x: x * x.sum()) + assert transformed[7] == 12 + tm.assert_series_equal(transformed, expected) + + value_grouped = data.groupby(data) + msg = "using SeriesGroupBy.mean" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = value_grouped.aggregate(np.mean) + tm.assert_series_equal(result, agged, check_index_type=False) + + # complex agg + msg = "using SeriesGroupBy.[mean|std]" + with tm.assert_produces_warning(FutureWarning, match=msg): + agged = grouped.aggregate([np.mean, np.std]) + + msg = r"nested renamer is not supported" + with pytest.raises(SpecificationError, match=msg): + grouped.aggregate({"one": np.mean, "two": np.std}) + + group_constants = {0: 10, 1: 20, 2: 30} + msg = ( + "Pinning the groupby key to each group in SeriesGroupBy.agg is deprecated, " + "and cases that relied on it will raise in a future version" + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + # GH#41090 + agged = grouped.agg(lambda x: group_constants[x.name] + x.mean()) + assert agged[1] == 21 + + # corner cases + msg = "Must produce aggregated value" + # exception raised is type Exception + with pytest.raises(Exception, match=msg): + grouped.aggregate(lambda x: x * 2) + + +def test_groupby_nonobject_dtype(multiindex_dataframe_random_data): + key = multiindex_dataframe_random_data.index.codes[0] + grouped = multiindex_dataframe_random_data.groupby(key) + result = grouped.sum() + + expected = multiindex_dataframe_random_data.groupby(key.astype("O")).sum() + assert result.index.dtype == np.int8 + assert expected.index.dtype == np.int64 + tm.assert_frame_equal(result, expected, check_index_type=False) + + +def test_groupby_nonobject_dtype_mixed(): + # GH 3911, mixed frame non-conversion + df = DataFrame( + { + "A": ["foo", "bar", "foo", "bar", "foo", "bar", "foo", "foo"], + "B": ["one", "one", "two", "three", "two", "two", "one", "three"], + "C": np.random.default_rng(2).standard_normal(8), + "D": np.array(np.random.default_rng(2).standard_normal(8), dtype="float32"), + } + ) + df["value"] = range(len(df)) + + def max_value(group): + return group.loc[group["value"].idxmax()] + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + applied = df.groupby("A").apply(max_value) + result = applied.dtypes + expected = df.dtypes + tm.assert_series_equal(result, expected) + + +def test_inconsistent_return_type(): + # GH5592 + # inconsistent return type + df = DataFrame( + { + "A": ["Tiger", "Tiger", "Tiger", "Lamb", "Lamb", "Pony", "Pony"], + "B": Series(np.arange(7), dtype="int64"), + "C": date_range("20130101", periods=7), + } + ) + + def f_0(grp): + return grp.iloc[0] + + expected = df.groupby("A").first()[["B"]] + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("A").apply(f_0)[["B"]] + tm.assert_frame_equal(result, expected) + + def f_1(grp): + if grp.name == "Tiger": + return None + return grp.iloc[0] + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("A").apply(f_1)[["B"]] + e = expected.copy() + e.loc["Tiger"] = np.nan + tm.assert_frame_equal(result, e) + + def f_2(grp): + if grp.name == "Pony": + return None + return grp.iloc[0] + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("A").apply(f_2)[["B"]] + e = expected.copy() + e.loc["Pony"] = np.nan + tm.assert_frame_equal(result, e) + + # 5592 revisited, with datetimes + def f_3(grp): + if grp.name == "Pony": + return None + return grp.iloc[0] + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("A").apply(f_3)[["C"]] + e = df.groupby("A").first()[["C"]] + e.loc["Pony"] = pd.NaT + tm.assert_frame_equal(result, e) + + # scalar outputs + def f_4(grp): + if grp.name == "Pony": + return None + return grp.iloc[0].loc["C"] + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("A").apply(f_4) + e = df.groupby("A").first()["C"].copy() + e.loc["Pony"] = np.nan + e.name = None + tm.assert_series_equal(result, e) + + +def test_pass_args_kwargs(ts, tsframe): + def f(x, q=None, axis=0): + return np.percentile(x, q, axis=axis) + + g = lambda x: np.percentile(x, 80, axis=0) + + # Series + ts_grouped = ts.groupby(lambda x: x.month) + agg_result = ts_grouped.agg(np.percentile, 80, axis=0) + apply_result = ts_grouped.apply(np.percentile, 80, axis=0) + trans_result = ts_grouped.transform(np.percentile, 80, axis=0) + + agg_expected = ts_grouped.quantile(0.8) + trans_expected = ts_grouped.transform(g) + + tm.assert_series_equal(apply_result, agg_expected) + tm.assert_series_equal(agg_result, agg_expected) + tm.assert_series_equal(trans_result, trans_expected) + + agg_result = ts_grouped.agg(f, q=80) + apply_result = ts_grouped.apply(f, q=80) + trans_result = ts_grouped.transform(f, q=80) + tm.assert_series_equal(agg_result, agg_expected) + tm.assert_series_equal(apply_result, agg_expected) + tm.assert_series_equal(trans_result, trans_expected) + + # DataFrame + for as_index in [True, False]: + df_grouped = tsframe.groupby(lambda x: x.month, as_index=as_index) + warn = None if as_index else FutureWarning + msg = "A grouping .* was excluded from the result" + with tm.assert_produces_warning(warn, match=msg): + agg_result = df_grouped.agg(np.percentile, 80, axis=0) + with tm.assert_produces_warning(warn, match=msg): + apply_result = df_grouped.apply(DataFrame.quantile, 0.8) + with tm.assert_produces_warning(warn, match=msg): + expected = df_grouped.quantile(0.8) + tm.assert_frame_equal(apply_result, expected, check_names=False) + tm.assert_frame_equal(agg_result, expected) + + apply_result = df_grouped.apply(DataFrame.quantile, [0.4, 0.8]) + with tm.assert_produces_warning(warn, match=msg): + expected_seq = df_grouped.quantile([0.4, 0.8]) + tm.assert_frame_equal(apply_result, expected_seq, check_names=False) + + with tm.assert_produces_warning(warn, match=msg): + agg_result = df_grouped.agg(f, q=80) + with tm.assert_produces_warning(warn, match=msg): + apply_result = df_grouped.apply(DataFrame.quantile, q=0.8) + tm.assert_frame_equal(agg_result, expected) + tm.assert_frame_equal(apply_result, expected, check_names=False) + + +@pytest.mark.parametrize("as_index", [True, False]) +def test_pass_args_kwargs_duplicate_columns(tsframe, as_index): + # go through _aggregate_frame with self.axis == 0 and duplicate columns + tsframe.columns = ["A", "B", "A", "C"] + gb = tsframe.groupby(lambda x: x.month, as_index=as_index) + + warn = None if as_index else FutureWarning + msg = "A grouping .* was excluded from the result" + with tm.assert_produces_warning(warn, match=msg): + res = gb.agg(np.percentile, 80, axis=0) + + ex_data = { + 1: tsframe[tsframe.index.month == 1].quantile(0.8), + 2: tsframe[tsframe.index.month == 2].quantile(0.8), + } + expected = DataFrame(ex_data).T + if not as_index: + # TODO: try to get this more consistent? + expected.index = Index(range(2)) + + tm.assert_frame_equal(res, expected) + + +def test_len(): + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 4)), + columns=Index(list("ABCD"), dtype=object), + index=date_range("2000-01-01", periods=10, freq="B"), + ) + grouped = df.groupby([lambda x: x.year, lambda x: x.month, lambda x: x.day]) + assert len(grouped) == len(df) + + grouped = df.groupby([lambda x: x.year, lambda x: x.month]) + expected = len({(x.year, x.month) for x in df.index}) + assert len(grouped) == expected + + +def test_len_nan_group(): + # issue 11016 + df = DataFrame({"a": [np.nan] * 3, "b": [1, 2, 3]}) + assert len(df.groupby("a")) == 0 + assert len(df.groupby("b")) == 3 + assert len(df.groupby(["a", "b"])) == 3 + + +def test_basic_regression(): + # regression + result = Series([1.0 * x for x in list(range(1, 10)) * 10]) + + data = np.random.default_rng(2).random(1100) * 10.0 + groupings = Series(data) + + grouped = result.groupby(groupings) + grouped.mean() + + +@pytest.mark.parametrize( + "dtype", ["float64", "float32", "int64", "int32", "int16", "int8"] +) +def test_with_na_groups(dtype): + index = Index(np.arange(10)) + values = Series(np.ones(10), index, dtype=dtype) + labels = Series( + [np.nan, "foo", "bar", "bar", np.nan, np.nan, "bar", "bar", np.nan, "foo"], + index=index, + ) + + # this SHOULD be an int + grouped = values.groupby(labels) + agged = grouped.agg(len) + expected = Series([4, 2], index=["bar", "foo"]) + + tm.assert_series_equal(agged, expected, check_dtype=False) + + # assert issubclass(agged.dtype.type, np.integer) + + # explicitly return a float from my function + def f(x): + return float(len(x)) + + agged = grouped.agg(f) + expected = Series([4.0, 2.0], index=["bar", "foo"]) + + tm.assert_series_equal(agged, expected) + + +def test_indices_concatenation_order(): + # GH 2808 + + def f1(x): + y = x[(x.b % 2) == 1] ** 2 + if y.empty: + multiindex = MultiIndex(levels=[[]] * 2, codes=[[]] * 2, names=["b", "c"]) + res = DataFrame(columns=["a"], index=multiindex) + return res + else: + y = y.set_index(["b", "c"]) + return y + + def f2(x): + y = x[(x.b % 2) == 1] ** 2 + if y.empty: + return DataFrame() + else: + y = y.set_index(["b", "c"]) + return y + + def f3(x): + y = x[(x.b % 2) == 1] ** 2 + if y.empty: + multiindex = MultiIndex( + levels=[[]] * 2, codes=[[]] * 2, names=["foo", "bar"] + ) + res = DataFrame(columns=["a", "b"], index=multiindex) + return res + else: + return y + + df = DataFrame({"a": [1, 2, 2, 2], "b": range(4), "c": range(5, 9)}) + + df2 = DataFrame({"a": [3, 2, 2, 2], "b": range(4), "c": range(5, 9)}) + + depr_msg = "The behavior of array concatenation with empty entries is deprecated" + + # correct result + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result1 = df.groupby("a").apply(f1) + with tm.assert_produces_warning(FutureWarning, match=msg): + result2 = df2.groupby("a").apply(f1) + tm.assert_frame_equal(result1, result2) + + # should fail (not the same number of levels) + msg = "Cannot concat indices that do not have the same number of levels" + with pytest.raises(AssertionError, match=msg): + df.groupby("a").apply(f2) + with pytest.raises(AssertionError, match=msg): + df2.groupby("a").apply(f2) + + # should fail (incorrect shape) + with pytest.raises(AssertionError, match=msg): + df.groupby("a").apply(f3) + with pytest.raises(AssertionError, match=msg): + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + df2.groupby("a").apply(f3) + + +def test_attr_wrapper(ts): + grouped = ts.groupby(lambda x: x.weekday()) + + result = grouped.std() + expected = grouped.agg(lambda x: np.std(x, ddof=1)) + tm.assert_series_equal(result, expected) + + # this is pretty cool + result = grouped.describe() + expected = {name: gp.describe() for name, gp in grouped} + expected = DataFrame(expected).T + tm.assert_frame_equal(result, expected) + + # get attribute + result = grouped.dtype + expected = grouped.agg(lambda x: x.dtype) + tm.assert_series_equal(result, expected) + + # make sure raises error + msg = "'SeriesGroupBy' object has no attribute 'foo'" + with pytest.raises(AttributeError, match=msg): + getattr(grouped, "foo") + + +def test_frame_groupby(tsframe): + grouped = tsframe.groupby(lambda x: x.weekday()) + + # aggregate + aggregated = grouped.aggregate("mean") + assert len(aggregated) == 5 + assert len(aggregated.columns) == 4 + + # by string + tscopy = tsframe.copy() + tscopy["weekday"] = [x.weekday() for x in tscopy.index] + stragged = tscopy.groupby("weekday").aggregate("mean") + tm.assert_frame_equal(stragged, aggregated, check_names=False) + + # transform + grouped = tsframe.head(30).groupby(lambda x: x.weekday()) + transformed = grouped.transform(lambda x: x - x.mean()) + assert len(transformed) == 30 + assert len(transformed.columns) == 4 + + # transform propagate + transformed = grouped.transform(lambda x: x.mean()) + for name, group in grouped: + mean = group.mean() + for idx in group.index: + tm.assert_series_equal(transformed.xs(idx), mean, check_names=False) + + # iterate + for weekday, group in grouped: + assert group.index[0].weekday() == weekday + + # groups / group_indices + groups = grouped.groups + indices = grouped.indices + + for k, v in groups.items(): + samething = tsframe.index.take(indices[k]) + assert (samething == v).all() + + +def test_frame_groupby_columns(tsframe): + mapping = {"A": 0, "B": 0, "C": 1, "D": 1} + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + grouped = tsframe.groupby(mapping, axis=1) + + # aggregate + aggregated = grouped.aggregate("mean") + assert len(aggregated) == len(tsframe) + assert len(aggregated.columns) == 2 + + # transform + tf = lambda x: x - x.mean() + msg = "The 'axis' keyword in DataFrame.groupby is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + groupedT = tsframe.T.groupby(mapping, axis=0) + tm.assert_frame_equal(groupedT.transform(tf).T, grouped.transform(tf)) + + # iterate + for k, v in grouped: + assert len(v.columns) == 2 + + +def test_frame_set_name_single(df): + grouped = df.groupby("A") + + result = grouped.mean(numeric_only=True) + assert result.index.name == "A" + + result = df.groupby("A", as_index=False).mean(numeric_only=True) + assert result.index.name != "A" + + result = grouped[["C", "D"]].agg("mean") + assert result.index.name == "A" + + result = grouped.agg({"C": "mean", "D": "std"}) + assert result.index.name == "A" + + result = grouped["C"].mean() + assert result.index.name == "A" + result = grouped["C"].agg("mean") + assert result.index.name == "A" + result = grouped["C"].agg(["mean", "std"]) + assert result.index.name == "A" + + msg = r"nested renamer is not supported" + with pytest.raises(SpecificationError, match=msg): + grouped["C"].agg({"foo": "mean", "bar": "std"}) + + +def test_multi_func(df): + col1 = df["A"] + col2 = df["B"] + + grouped = df.groupby([col1.get, col2.get]) + agged = grouped.mean(numeric_only=True) + expected = df.groupby(["A", "B"]).mean() + + # TODO groupby get drops names + tm.assert_frame_equal( + agged.loc[:, ["C", "D"]], expected.loc[:, ["C", "D"]], check_names=False + ) + + # some "groups" with no data + df = DataFrame( + { + "v1": np.random.default_rng(2).standard_normal(6), + "v2": np.random.default_rng(2).standard_normal(6), + "k1": np.array(["b", "b", "b", "a", "a", "a"]), + "k2": np.array(["1", "1", "1", "2", "2", "2"]), + }, + index=["one", "two", "three", "four", "five", "six"], + ) + # only verify that it works for now + grouped = df.groupby(["k1", "k2"]) + grouped.agg("sum") + + +def test_multi_key_multiple_functions(df): + grouped = df.groupby(["A", "B"])["C"] + + agged = grouped.agg(["mean", "std"]) + expected = DataFrame({"mean": grouped.agg("mean"), "std": grouped.agg("std")}) + tm.assert_frame_equal(agged, expected) + + +def test_frame_multi_key_function_list(): + data = DataFrame( + { + "A": [ + "foo", + "foo", + "foo", + "foo", + "bar", + "bar", + "bar", + "bar", + "foo", + "foo", + "foo", + ], + "B": [ + "one", + "one", + "one", + "two", + "one", + "one", + "one", + "two", + "two", + "two", + "one", + ], + "D": np.random.default_rng(2).standard_normal(11), + "E": np.random.default_rng(2).standard_normal(11), + "F": np.random.default_rng(2).standard_normal(11), + } + ) + + grouped = data.groupby(["A", "B"]) + funcs = ["mean", "std"] + agged = grouped.agg(funcs) + expected = pd.concat( + [grouped["D"].agg(funcs), grouped["E"].agg(funcs), grouped["F"].agg(funcs)], + keys=["D", "E", "F"], + axis=1, + ) + assert isinstance(agged.index, MultiIndex) + assert isinstance(expected.index, MultiIndex) + tm.assert_frame_equal(agged, expected) + + +def test_frame_multi_key_function_list_partial_failure(using_infer_string): + data = DataFrame( + { + "A": [ + "foo", + "foo", + "foo", + "foo", + "bar", + "bar", + "bar", + "bar", + "foo", + "foo", + "foo", + ], + "B": [ + "one", + "one", + "one", + "two", + "one", + "one", + "one", + "two", + "two", + "two", + "one", + ], + "C": [ + "dull", + "dull", + "shiny", + "dull", + "dull", + "shiny", + "shiny", + "dull", + "shiny", + "shiny", + "shiny", + ], + "D": np.random.default_rng(2).standard_normal(11), + "E": np.random.default_rng(2).standard_normal(11), + "F": np.random.default_rng(2).standard_normal(11), + } + ) + + grouped = data.groupby(["A", "B"]) + funcs = ["mean", "std"] + msg = re.escape("agg function failed [how->mean,dtype->") + if using_infer_string: + msg = "dtype 'str' does not support operation 'mean'" + with pytest.raises(TypeError, match=msg): + grouped.agg(funcs) + + +@pytest.mark.parametrize("op", [lambda x: x.sum(), lambda x: x.mean()]) +def test_groupby_multiple_columns(df, op): + data = df + grouped = data.groupby(["A", "B"]) + + result1 = op(grouped) + + keys = [] + values = [] + for n1, gp1 in data.groupby("A"): + for n2, gp2 in gp1.groupby("B"): + keys.append((n1, n2)) + values.append(op(gp2.loc[:, ["C", "D"]])) + + mi = MultiIndex.from_tuples(keys, names=["A", "B"]) + expected = pd.concat(values, axis=1).T + expected.index = mi + + # a little bit crude + for col in ["C", "D"]: + result_col = op(grouped[col]) + pivoted = result1[col] + exp = expected[col] + tm.assert_series_equal(result_col, exp) + tm.assert_series_equal(pivoted, exp) + + # test single series works the same + result = data["C"].groupby([data["A"], data["B"]]).mean() + expected = data.groupby(["A", "B"]).mean()["C"] + + tm.assert_series_equal(result, expected) + + +def test_as_index_select_column(): + # GH 5764 + df = DataFrame([[1, 2], [1, 4], [5, 6]], columns=["A", "B"]) + result = df.groupby("A", as_index=False)["B"].get_group(1) + expected = Series([2, 4], name="B") + tm.assert_series_equal(result, expected) + + result = df.groupby("A", as_index=False, group_keys=True)["B"].apply( + lambda x: x.cumsum() + ) + expected = Series( + [2, 6, 6], name="B", index=MultiIndex.from_tuples([(0, 0), (0, 1), (1, 2)]) + ) + tm.assert_series_equal(result, expected) + + +def test_obj_arg_get_group_deprecated(): + depr_msg = "obj is deprecated" + + df = DataFrame({"a": [1, 1, 2], "b": [3, 4, 5]}) + expected = df.iloc[df.groupby("b").indices.get(4)] + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + result = df.groupby("b").get_group(4, obj=df) + tm.assert_frame_equal(result, expected) + + +def test_groupby_as_index_select_column_sum_empty_df(): + # GH 35246 + df = DataFrame(columns=Index(["A", "B", "C"], name="alpha")) + left = df.groupby(by="A", as_index=False)["B"].sum(numeric_only=False) + + expected = DataFrame(columns=df.columns[:2], index=range(0)) + # GH#50744 - Columns after selection shouldn't retain names + expected.columns.names = [None] + tm.assert_frame_equal(left, expected) + + +def test_groupby_as_index_agg(df): + grouped = df.groupby("A", as_index=False) + + # single-key + + result = grouped[["C", "D"]].agg("mean") + expected = grouped.mean(numeric_only=True) + tm.assert_frame_equal(result, expected) + + result2 = grouped.agg({"C": "mean", "D": "sum"}) + expected2 = grouped.mean(numeric_only=True) + expected2["D"] = grouped.sum()["D"] + tm.assert_frame_equal(result2, expected2) + + grouped = df.groupby("A", as_index=True) + + msg = r"nested renamer is not supported" + with pytest.raises(SpecificationError, match=msg): + grouped["C"].agg({"Q": "sum"}) + + # multi-key + + grouped = df.groupby(["A", "B"], as_index=False) + + result = grouped.agg("mean") + expected = grouped.mean() + tm.assert_frame_equal(result, expected) + + result2 = grouped.agg({"C": "mean", "D": "sum"}) + expected2 = grouped.mean() + expected2["D"] = grouped.sum()["D"] + tm.assert_frame_equal(result2, expected2) + + expected3 = grouped["C"].sum() + expected3 = DataFrame(expected3).rename(columns={"C": "Q"}) + msg = "Passing a dictionary to SeriesGroupBy.agg is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + result3 = grouped["C"].agg({"Q": "sum"}) + tm.assert_frame_equal(result3, expected3) + + # GH7115 & GH8112 & GH8582 + df = DataFrame( + np.random.default_rng(2).integers(0, 100, (50, 3)), + columns=["jim", "joe", "jolie"], + ) + ts = Series(np.random.default_rng(2).integers(5, 10, 50), name="jim") + + gr = df.groupby(ts) + gr.nth(0) # invokes set_selection_from_grouper internally + + msg = "The behavior of DataFrame.sum with axis=None is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg, check_stacklevel=False): + res = gr.apply(sum) + with tm.assert_produces_warning(FutureWarning, match=msg, check_stacklevel=False): + alt = df.groupby(ts).apply(sum) + tm.assert_frame_equal(res, alt) + + for attr in ["mean", "max", "count", "idxmax", "cumsum", "all"]: + gr = df.groupby(ts, as_index=False) + left = getattr(gr, attr)() + + gr = df.groupby(ts.values, as_index=True) + right = getattr(gr, attr)().reset_index(drop=True) + + tm.assert_frame_equal(left, right) + + +def test_ops_not_as_index(reduction_func): + # GH 10355, 21090 + # Using as_index=False should not modify grouped column + + if reduction_func in ("corrwith", "nth", "ngroup"): + pytest.skip(f"GH 5755: Test not applicable for {reduction_func}") + + df = DataFrame( + np.random.default_rng(2).integers(0, 5, size=(100, 2)), columns=["a", "b"] + ) + expected = getattr(df.groupby("a"), reduction_func)() + if reduction_func == "size": + expected = expected.rename("size") + expected = expected.reset_index() + + if reduction_func != "size": + # 32 bit compat -> groupby preserves dtype whereas reset_index casts to int64 + expected["a"] = expected["a"].astype(df["a"].dtype) + + g = df.groupby("a", as_index=False) + + result = getattr(g, reduction_func)() + tm.assert_frame_equal(result, expected) + + result = g.agg(reduction_func) + tm.assert_frame_equal(result, expected) + + result = getattr(g["b"], reduction_func)() + tm.assert_frame_equal(result, expected) + + result = g["b"].agg(reduction_func) + tm.assert_frame_equal(result, expected) + + +def test_as_index_series_return_frame(df): + grouped = df.groupby("A", as_index=False) + grouped2 = df.groupby(["A", "B"], as_index=False) + + result = grouped["C"].agg("sum") + expected = grouped.agg("sum").loc[:, ["A", "C"]] + assert isinstance(result, DataFrame) + tm.assert_frame_equal(result, expected) + + result2 = grouped2["C"].agg("sum") + expected2 = grouped2.agg("sum").loc[:, ["A", "B", "C"]] + assert isinstance(result2, DataFrame) + tm.assert_frame_equal(result2, expected2) + + result = grouped["C"].sum() + expected = grouped.sum().loc[:, ["A", "C"]] + assert isinstance(result, DataFrame) + tm.assert_frame_equal(result, expected) + + result2 = grouped2["C"].sum() + expected2 = grouped2.sum().loc[:, ["A", "B", "C"]] + assert isinstance(result2, DataFrame) + tm.assert_frame_equal(result2, expected2) + + +def test_as_index_series_column_slice_raises(df): + # GH15072 + grouped = df.groupby("A", as_index=False) + msg = r"Column\(s\) C already selected" + + with pytest.raises(IndexError, match=msg): + grouped["C"].__getitem__("D") + + +def test_groupby_as_index_cython(df): + data = df + + # single-key + grouped = data.groupby("A", as_index=False) + result = grouped.mean(numeric_only=True) + expected = data.groupby(["A"]).mean(numeric_only=True) + expected.insert(0, "A", expected.index) + expected.index = RangeIndex(len(expected)) + tm.assert_frame_equal(result, expected) + + # multi-key + grouped = data.groupby(["A", "B"], as_index=False) + result = grouped.mean() + expected = data.groupby(["A", "B"]).mean() + + arrays = list(zip(*expected.index.values)) + expected.insert(0, "A", arrays[0]) + expected.insert(1, "B", arrays[1]) + expected.index = RangeIndex(len(expected)) + tm.assert_frame_equal(result, expected) + + +def test_groupby_as_index_series_scalar(df): + grouped = df.groupby(["A", "B"], as_index=False) + + # GH #421 + + result = grouped["C"].agg(len) + expected = grouped.agg(len).loc[:, ["A", "B", "C"]] + tm.assert_frame_equal(result, expected) + + +def test_groupby_as_index_corner(df, ts): + msg = "as_index=False only valid with DataFrame" + with pytest.raises(TypeError, match=msg): + ts.groupby(lambda x: x.weekday(), as_index=False) + + msg = "as_index=False only valid for axis=0" + depr_msg = "DataFrame.groupby with axis=1 is deprecated" + with pytest.raises(ValueError, match=msg): + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + df.groupby(lambda x: x.lower(), as_index=False, axis=1) + + +def test_groupby_multiple_key(): + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 4)), + columns=Index(list("ABCD"), dtype=object), + index=date_range("2000-01-01", periods=10, freq="B"), + ) + grouped = df.groupby([lambda x: x.year, lambda x: x.month, lambda x: x.day]) + agged = grouped.sum() + tm.assert_almost_equal(df.values, agged.values) + + depr_msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + grouped = df.T.groupby( + [lambda x: x.year, lambda x: x.month, lambda x: x.day], axis=1 + ) + + agged = grouped.agg(lambda x: x.sum()) + tm.assert_index_equal(agged.index, df.columns) + tm.assert_almost_equal(df.T.values, agged.values) + + agged = grouped.agg(lambda x: x.sum()) + tm.assert_almost_equal(df.T.values, agged.values) + + +def test_groupby_multi_corner(df): + # test that having an all-NA column doesn't mess you up + df = df.copy() + df["bad"] = np.nan + agged = df.groupby(["A", "B"]).mean() + + expected = df.groupby(["A", "B"]).mean() + expected["bad"] = np.nan + + tm.assert_frame_equal(agged, expected) + + +def test_raises_on_nuisance(df, using_infer_string): + grouped = df.groupby("A") + msg = re.escape("agg function failed [how->mean,dtype->") + if using_infer_string: + msg = "dtype 'str' does not support operation 'mean'" + with pytest.raises(TypeError, match=msg): + grouped.agg("mean") + with pytest.raises(TypeError, match=msg): + grouped.mean() + + df = df.loc[:, ["A", "C", "D"]] + df["E"] = datetime.now() + grouped = df.groupby("A") + msg = "datetime64 type does not support sum operations" + with pytest.raises(TypeError, match=msg): + grouped.agg("sum") + with pytest.raises(TypeError, match=msg): + grouped.sum() + + # won't work with axis = 1 + depr_msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + grouped = df.groupby({"A": 0, "C": 0, "D": 1, "E": 1}, axis=1) + msg = "does not support reduction 'sum'|Cannot perform reduction 'sum'" + with pytest.raises(TypeError, match=msg): + grouped.agg(lambda x: x.sum(0, numeric_only=False)) + + +@pytest.mark.parametrize( + "agg_function", + ["max", "min"], +) +def test_keep_nuisance_agg(df, agg_function): + # GH 38815 + grouped = df.groupby("A") + result = getattr(grouped, agg_function)() + expected = result.copy() + expected.loc["bar", "B"] = getattr(df.loc[df["A"] == "bar", "B"], agg_function)() + expected.loc["foo", "B"] = getattr(df.loc[df["A"] == "foo", "B"], agg_function)() + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "agg_function", + ["sum", "mean", "prod", "std", "var", "sem", "median"], +) +@pytest.mark.parametrize("numeric_only", [True, False]) +def test_omit_nuisance_agg(df, agg_function, numeric_only, using_infer_string): + # GH 38774, GH 38815 + grouped = df.groupby("A") + + no_drop_nuisance = ("var", "std", "sem", "mean", "prod", "median") + if agg_function in no_drop_nuisance and not numeric_only: + # Added numeric_only as part of GH#46560; these do not drop nuisance + # columns when numeric_only is False + if using_infer_string: + msg = f"dtype 'str' does not support operation '{agg_function}'" + klass = TypeError + elif agg_function in ("std", "sem"): + klass = ValueError + msg = "could not convert string to float: 'one'" + else: + klass = TypeError + msg = re.escape(f"agg function failed [how->{agg_function},dtype->") + with pytest.raises(klass, match=msg): + getattr(grouped, agg_function)(numeric_only=numeric_only) + else: + result = getattr(grouped, agg_function)(numeric_only=numeric_only) + if not numeric_only and agg_function == "sum": + # sum is successful on column B + columns = ["A", "B", "C", "D"] + else: + columns = ["A", "C", "D"] + expected = getattr(df.loc[:, columns].groupby("A"), agg_function)( + numeric_only=numeric_only + ) + tm.assert_frame_equal(result, expected) + + +def test_raise_on_nuisance_python_single(df, using_infer_string): + # GH 38815 + grouped = df.groupby("A") + + err = ValueError + msg = "could not convert" + if using_infer_string: + err = TypeError + msg = "dtype 'str' does not support operation 'skew'" + with pytest.raises(err, match=msg): + grouped.skew() + + +def test_raise_on_nuisance_python_multiple(three_group, using_infer_string): + grouped = three_group.groupby(["A", "B"]) + msg = re.escape("agg function failed [how->mean,dtype->") + if using_infer_string: + msg = "dtype 'str' does not support operation 'mean'" + with pytest.raises(TypeError, match=msg): + grouped.agg("mean") + with pytest.raises(TypeError, match=msg): + grouped.mean() + + +def test_empty_groups_corner(multiindex_dataframe_random_data): + # handle empty groups + df = DataFrame( + { + "k1": np.array(["b", "b", "b", "a", "a", "a"]), + "k2": np.array(["1", "1", "1", "2", "2", "2"]), + "k3": ["foo", "bar"] * 3, + "v1": np.random.default_rng(2).standard_normal(6), + "v2": np.random.default_rng(2).standard_normal(6), + } + ) + + grouped = df.groupby(["k1", "k2"]) + result = grouped[["v1", "v2"]].agg("mean") + expected = grouped.mean(numeric_only=True) + tm.assert_frame_equal(result, expected) + + grouped = multiindex_dataframe_random_data[3:5].groupby(level=0) + agged = grouped.apply(lambda x: x.mean()) + agged_A = grouped["A"].apply("mean") + tm.assert_series_equal(agged["A"], agged_A) + assert agged.index.name == "first" + + +def test_nonsense_func(): + df = DataFrame([0]) + msg = r"unsupported operand type\(s\) for \+: 'int' and 'str'" + with pytest.raises(TypeError, match=msg): + df.groupby(lambda x: x + "foo") + + +def test_wrap_aggregated_output_multindex( + multiindex_dataframe_random_data, using_infer_string +): + df = multiindex_dataframe_random_data.T + df["baz", "two"] = "peekaboo" + + keys = [np.array([0, 0, 1]), np.array([0, 0, 1])] + msg = re.escape("agg function failed [how->mean,dtype->") + if using_infer_string: + msg = "dtype 'str' does not support operation 'mean'" + with pytest.raises(TypeError, match=msg): + df.groupby(keys).agg("mean") + agged = df.drop(columns=("baz", "two")).groupby(keys).agg("mean") + assert isinstance(agged.columns, MultiIndex) + + def aggfun(ser): + if ser.name == ("foo", "one"): + raise TypeError("Test error message") + return ser.sum() + + with pytest.raises(TypeError, match="Test error message"): + df.groupby(keys).aggregate(aggfun) + + +def test_groupby_level_apply(multiindex_dataframe_random_data): + result = multiindex_dataframe_random_data.groupby(level=0).count() + assert result.index.name == "first" + result = multiindex_dataframe_random_data.groupby(level=1).count() + assert result.index.name == "second" + + result = multiindex_dataframe_random_data["A"].groupby(level=0).count() + assert result.index.name == "first" + + +def test_groupby_level_mapper(multiindex_dataframe_random_data): + deleveled = multiindex_dataframe_random_data.reset_index() + + mapper0 = {"foo": 0, "bar": 0, "baz": 1, "qux": 1} + mapper1 = {"one": 0, "two": 0, "three": 1} + + result0 = multiindex_dataframe_random_data.groupby(mapper0, level=0).sum() + result1 = multiindex_dataframe_random_data.groupby(mapper1, level=1).sum() + + mapped_level0 = np.array( + [mapper0.get(x) for x in deleveled["first"]], dtype=np.int64 + ) + mapped_level1 = np.array( + [mapper1.get(x) for x in deleveled["second"]], dtype=np.int64 + ) + expected0 = multiindex_dataframe_random_data.groupby(mapped_level0).sum() + expected1 = multiindex_dataframe_random_data.groupby(mapped_level1).sum() + expected0.index.name, expected1.index.name = "first", "second" + + tm.assert_frame_equal(result0, expected0) + tm.assert_frame_equal(result1, expected1) + + +def test_groupby_level_nonmulti(): + # GH 1313, GH 13901 + s = Series([1, 2, 3, 10, 4, 5, 20, 6], Index([1, 2, 3, 1, 4, 5, 2, 6], name="foo")) + expected = Series([11, 22, 3, 4, 5, 6], Index(range(1, 7), name="foo")) + + result = s.groupby(level=0).sum() + tm.assert_series_equal(result, expected) + result = s.groupby(level=[0]).sum() + tm.assert_series_equal(result, expected) + result = s.groupby(level=-1).sum() + tm.assert_series_equal(result, expected) + result = s.groupby(level=[-1]).sum() + tm.assert_series_equal(result, expected) + + msg = "level > 0 or level < -1 only valid with MultiIndex" + with pytest.raises(ValueError, match=msg): + s.groupby(level=1) + with pytest.raises(ValueError, match=msg): + s.groupby(level=-2) + msg = "No group keys passed!" + with pytest.raises(ValueError, match=msg): + s.groupby(level=[]) + msg = "multiple levels only valid with MultiIndex" + with pytest.raises(ValueError, match=msg): + s.groupby(level=[0, 0]) + with pytest.raises(ValueError, match=msg): + s.groupby(level=[0, 1]) + msg = "level > 0 or level < -1 only valid with MultiIndex" + with pytest.raises(ValueError, match=msg): + s.groupby(level=[1]) + + +def test_groupby_complex(): + # GH 12902 + a = Series(data=np.arange(4) * (1 + 2j), index=[0, 0, 1, 1]) + expected = Series((1 + 2j, 5 + 10j)) + + result = a.groupby(level=0).sum() + tm.assert_series_equal(result, expected) + + +def test_groupby_complex_mean(): + # GH 26475 + df = DataFrame( + [ + {"a": 2, "b": 1 + 2j}, + {"a": 1, "b": 1 + 1j}, + {"a": 1, "b": 1 + 2j}, + ] + ) + result = df.groupby("b").mean() + expected = DataFrame( + [[1.0], [1.5]], + index=Index([(1 + 1j), (1 + 2j)], name="b"), + columns=Index(["a"]), + ) + tm.assert_frame_equal(result, expected) + + +def test_groupby_complex_numbers(): + # GH 17927 + df = DataFrame( + [ + {"a": 1, "b": 1 + 1j}, + {"a": 1, "b": 1 + 2j}, + {"a": 4, "b": 1}, + ] + ) + expected = DataFrame( + np.array([1, 1, 1], dtype=np.int64), + index=Index([(1 + 1j), (1 + 2j), (1 + 0j)], name="b"), + columns=Index(["a"]), + ) + result = df.groupby("b", sort=False).count() + tm.assert_frame_equal(result, expected) + + # Sorted by the magnitude of the complex numbers + expected.index = Index([(1 + 0j), (1 + 1j), (1 + 2j)], name="b") + result = df.groupby("b", sort=True).count() + tm.assert_frame_equal(result, expected) + + +def test_groupby_series_indexed_differently(): + s1 = Series( + [5.0, -9.0, 4.0, 100.0, -5.0, 55.0, 6.7], + index=Index(["a", "b", "c", "d", "e", "f", "g"]), + ) + s2 = Series( + [1.0, 1.0, 4.0, 5.0, 5.0, 7.0], index=Index(["a", "b", "d", "f", "g", "h"]) + ) + + grouped = s1.groupby(s2) + agged = grouped.mean() + exp = s1.groupby(s2.reindex(s1.index).get).mean() + tm.assert_series_equal(agged, exp) + + +def test_groupby_with_hier_columns(): + tuples = list( + zip( + *[ + ["bar", "bar", "baz", "baz", "foo", "foo", "qux", "qux"], + ["one", "two", "one", "two", "one", "two", "one", "two"], + ] + ) + ) + index = MultiIndex.from_tuples(tuples) + columns = MultiIndex.from_tuples( + [("A", "cat"), ("B", "dog"), ("B", "cat"), ("A", "dog")] + ) + df = DataFrame( + np.random.default_rng(2).standard_normal((8, 4)), index=index, columns=columns + ) + + result = df.groupby(level=0).mean() + tm.assert_index_equal(result.columns, columns) + + depr_msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + gb = df.groupby(level=0, axis=1) + result = gb.mean() + tm.assert_index_equal(result.index, df.index) + + result = df.groupby(level=0).agg("mean") + tm.assert_index_equal(result.columns, columns) + + result = df.groupby(level=0).apply(lambda x: x.mean()) + tm.assert_index_equal(result.columns, columns) + + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + gb = df.groupby(level=0, axis=1) + result = gb.agg(lambda x: x.mean(1)) + tm.assert_index_equal(result.columns, Index(["A", "B"])) + tm.assert_index_equal(result.index, df.index) + + # add a nuisance column + sorted_columns, _ = columns.sortlevel(0) + df["A", "foo"] = "bar" + result = df.groupby(level=0).mean(numeric_only=True) + tm.assert_index_equal(result.columns, df.columns[:-1]) + + +def test_grouping_ndarray(df): + grouped = df.groupby(df["A"].values) + grouped2 = df.groupby(df["A"].rename(None)) + + result = grouped.sum() + expected = grouped2.sum() + tm.assert_frame_equal(result, expected) + + +def test_groupby_wrong_multi_labels(): + index = Index([0, 1, 2, 3, 4], name="index") + data = DataFrame( + { + "foo": ["foo1", "foo1", "foo2", "foo1", "foo3"], + "bar": ["bar1", "bar2", "bar2", "bar1", "bar1"], + "baz": ["baz1", "baz1", "baz1", "baz2", "baz2"], + "spam": ["spam2", "spam3", "spam2", "spam1", "spam1"], + "data": [20, 30, 40, 50, 60], + }, + index=index, + ) + + grouped = data.groupby(["foo", "bar", "baz", "spam"]) + + result = grouped.agg("mean") + expected = grouped.mean() + tm.assert_frame_equal(result, expected) + + +def test_groupby_series_with_name(df): + result = df.groupby(df["A"]).mean(numeric_only=True) + result2 = df.groupby(df["A"], as_index=False).mean(numeric_only=True) + assert result.index.name == "A" + assert "A" in result2 + + result = df.groupby([df["A"], df["B"]]).mean() + result2 = df.groupby([df["A"], df["B"]], as_index=False).mean() + assert result.index.names == ("A", "B") + assert "A" in result2 + assert "B" in result2 + + +def test_seriesgroupby_name_attr(df): + # GH 6265 + result = df.groupby("A")["C"] + assert result.count().name == "C" + assert result.mean().name == "C" + + testFunc = lambda x: np.sum(x) * 2 + assert result.agg(testFunc).name == "C" + + +def test_consistency_name(): + # GH 12363 + + df = DataFrame( + { + "A": ["foo", "bar", "foo", "bar", "foo", "bar", "foo", "foo"], + "B": ["one", "one", "two", "two", "two", "two", "one", "two"], + "C": np.random.default_rng(2).standard_normal(8) + 1.0, + "D": np.arange(8), + } + ) + + expected = df.groupby(["A"]).B.count() + result = df.B.groupby(df.A).count() + tm.assert_series_equal(result, expected) + + +def test_groupby_name_propagation(df): + # GH 6124 + def summarize(df, name=None): + return Series({"count": 1, "mean": 2, "omissions": 3}, name=name) + + def summarize_random_name(df): + # Provide a different name for each Series. In this case, groupby + # should not attempt to propagate the Series name since they are + # inconsistent. + return Series({"count": 1, "mean": 2, "omissions": 3}, name=df.iloc[0]["A"]) + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + metrics = df.groupby("A").apply(summarize) + assert metrics.columns.name is None + with tm.assert_produces_warning(FutureWarning, match=msg): + metrics = df.groupby("A").apply(summarize, "metrics") + assert metrics.columns.name == "metrics" + with tm.assert_produces_warning(FutureWarning, match=msg): + metrics = df.groupby("A").apply(summarize_random_name) + assert metrics.columns.name is None + + +def test_groupby_nonstring_columns(): + df = DataFrame([np.arange(10) for x in range(10)]) + grouped = df.groupby(0) + result = grouped.mean() + expected = df.groupby(df[0]).mean() + tm.assert_frame_equal(result, expected) + + +def test_groupby_mixed_type_columns(): + # GH 13432, unorderable types in py3 + df = DataFrame([[0, 1, 2]], columns=["A", "B", 0]) + expected = DataFrame([[1, 2]], columns=["B", 0], index=Index([0], name="A")) + + result = df.groupby("A").first() + tm.assert_frame_equal(result, expected) + + result = df.groupby("A").sum() + tm.assert_frame_equal(result, expected) + + +def test_cython_grouper_series_bug_noncontig(): + arr = np.empty((100, 100)) + arr.fill(np.nan) + obj = Series(arr[:, 0]) + inds = np.tile(range(10), 10) + + result = obj.groupby(inds).agg(Series.median) + assert result.isna().all() + + +def test_series_grouper_noncontig_index(): + index = Index(["a" * 10] * 100) + + values = Series(np.random.default_rng(2).standard_normal(50), index=index[::2]) + labels = np.random.default_rng(2).integers(0, 5, 50) + + # it works! + grouped = values.groupby(labels) + + # accessing the index elements causes segfault + f = lambda x: len(set(map(id, x.index))) + grouped.agg(f) + + +def test_convert_objects_leave_decimal_alone(): + s = Series(range(5)) + labels = np.array(["a", "b", "c", "d", "e"], dtype="O") + + def convert_fast(x): + return Decimal(str(x.mean())) + + def convert_force_pure(x): + # base will be length 0 + assert len(x.values.base) > 0 + return Decimal(str(x.mean())) + + grouped = s.groupby(labels) + + result = grouped.agg(convert_fast) + assert result.dtype == np.object_ + assert isinstance(result.iloc[0], Decimal) + + result = grouped.agg(convert_force_pure) + assert result.dtype == np.object_ + assert isinstance(result.iloc[0], Decimal) + + +def test_groupby_dtype_inference_empty(): + # GH 6733 + df = DataFrame({"x": [], "range": np.arange(0, dtype="int64")}) + assert df["x"].dtype == np.float64 + + result = df.groupby("x").first() + exp_index = Index([], name="x", dtype=np.float64) + expected = DataFrame({"range": Series([], index=exp_index, dtype="int64")}) + tm.assert_frame_equal(result, expected, by_blocks=True) + + +def test_groupby_unit64_float_conversion(): + # GH: 30859 groupby converts unit64 to floats sometimes + df = DataFrame({"first": [1], "second": [1], "value": [16148277970000000000]}) + result = df.groupby(["first", "second"])["value"].max() + expected = Series( + [16148277970000000000], + MultiIndex.from_product([[1], [1]], names=["first", "second"]), + name="value", + ) + tm.assert_series_equal(result, expected) + + +def test_groupby_list_infer_array_like(df): + result = df.groupby(list(df["A"])).mean(numeric_only=True) + expected = df.groupby(df["A"]).mean(numeric_only=True) + tm.assert_frame_equal(result, expected, check_names=False) + + with pytest.raises(KeyError, match=r"^'foo'$"): + df.groupby(list(df["A"][:-1])) + + # pathological case of ambiguity + df = DataFrame( + { + "foo": [0, 1], + "bar": [3, 4], + "val": np.random.default_rng(2).standard_normal(2), + } + ) + + result = df.groupby(["foo", "bar"]).mean() + expected = df.groupby([df["foo"], df["bar"]]).mean()[["val"]] + + +def test_groupby_keys_same_size_as_index(): + # GH 11185 + freq = "s" + index = date_range( + start=Timestamp("2015-09-29T11:34:44-0700"), periods=2, freq=freq + ) + df = DataFrame([["A", 10], ["B", 15]], columns=["metric", "values"], index=index) + result = df.groupby([Grouper(level=0, freq=freq), "metric"]).mean() + expected = df.set_index([df.index, "metric"]).astype(float) + + tm.assert_frame_equal(result, expected) + + +def test_groupby_one_row(): + # GH 11741 + msg = r"^'Z'$" + df1 = DataFrame( + np.random.default_rng(2).standard_normal((1, 4)), columns=list("ABCD") + ) + with pytest.raises(KeyError, match=msg): + df1.groupby("Z") + df2 = DataFrame( + np.random.default_rng(2).standard_normal((2, 4)), columns=list("ABCD") + ) + with pytest.raises(KeyError, match=msg): + df2.groupby("Z") + + +def test_groupby_nat_exclude(): + # GH 6992 + df = DataFrame( + { + "values": np.random.default_rng(2).standard_normal(8), + "dt": [ + np.nan, + Timestamp("2013-01-01"), + np.nan, + Timestamp("2013-02-01"), + np.nan, + Timestamp("2013-02-01"), + np.nan, + Timestamp("2013-01-01"), + ], + "str": [np.nan, "a", np.nan, "a", np.nan, "a", np.nan, "b"], + } + ) + grouped = df.groupby("dt") + + expected = [Index([1, 7]), Index([3, 5])] + keys = sorted(grouped.groups.keys()) + assert len(keys) == 2 + for k, e in zip(keys, expected): + # grouped.groups keys are np.datetime64 with system tz + # not to be affected by tz, only compare values + tm.assert_index_equal(grouped.groups[k], e) + + # confirm obj is not filtered + tm.assert_frame_equal(grouped._grouper.groupings[0].obj, df) + assert grouped.ngroups == 2 + + expected = { + Timestamp("2013-01-01 00:00:00"): np.array([1, 7], dtype=np.intp), + Timestamp("2013-02-01 00:00:00"): np.array([3, 5], dtype=np.intp), + } + + for k in grouped.indices: + tm.assert_numpy_array_equal(grouped.indices[k], expected[k]) + + tm.assert_frame_equal(grouped.get_group(Timestamp("2013-01-01")), df.iloc[[1, 7]]) + tm.assert_frame_equal(grouped.get_group(Timestamp("2013-02-01")), df.iloc[[3, 5]]) + + with pytest.raises(KeyError, match=r"^NaT$"): + grouped.get_group(pd.NaT) + + nan_df = DataFrame( + {"nan": [np.nan, np.nan, np.nan], "nat": [pd.NaT, pd.NaT, pd.NaT]} + ) + assert nan_df["nan"].dtype == "float64" + assert nan_df["nat"].dtype == "datetime64[ns]" + + for key in ["nan", "nat"]: + grouped = nan_df.groupby(key) + assert grouped.groups == {} + assert grouped.ngroups == 0 + assert grouped.indices == {} + with pytest.raises(KeyError, match=r"^nan$"): + grouped.get_group(np.nan) + with pytest.raises(KeyError, match=r"^NaT$"): + grouped.get_group(pd.NaT) + + +def test_groupby_two_group_keys_all_nan(): + # GH #36842: Grouping over two group keys shouldn't raise an error + df = DataFrame({"a": [np.nan, np.nan], "b": [np.nan, np.nan], "c": [1, 2]}) + result = df.groupby(["a", "b"]).indices + assert result == {} + + +def test_groupby_2d_malformed(): + d = DataFrame(index=range(2)) + d["group"] = ["g1", "g2"] + d["zeros"] = [0, 0] + d["ones"] = [1, 1] + d["label"] = ["l1", "l2"] + tmp = d.groupby(["group"]).mean(numeric_only=True) + res_values = np.array([[0.0, 1.0], [0.0, 1.0]]) + tm.assert_index_equal(tmp.columns, Index(["zeros", "ones"])) + tm.assert_numpy_array_equal(tmp.values, res_values) + + +def test_int32_overflow(): + B = np.concatenate((np.arange(10000), np.arange(10000), np.arange(5000))) + A = np.arange(25000) + df = DataFrame( + { + "A": A, + "B": B, + "C": A, + "D": B, + "E": np.random.default_rng(2).standard_normal(25000), + } + ) + + left = df.groupby(["A", "B", "C", "D"]).sum() + right = df.groupby(["D", "C", "B", "A"]).sum() + assert len(left) == len(right) + + +def test_groupby_sort_multi(): + df = DataFrame( + { + "a": ["foo", "bar", "baz"], + "b": [3, 2, 1], + "c": [0, 1, 2], + "d": np.random.default_rng(2).standard_normal(3), + } + ) + + tups = [tuple(row) for row in df[["a", "b", "c"]].values] + tups = com.asarray_tuplesafe(tups) + result = df.groupby(["a", "b", "c"], sort=True).sum() + tm.assert_numpy_array_equal(result.index.values, tups[[1, 2, 0]]) + + tups = [tuple(row) for row in df[["c", "a", "b"]].values] + tups = com.asarray_tuplesafe(tups) + result = df.groupby(["c", "a", "b"], sort=True).sum() + tm.assert_numpy_array_equal(result.index.values, tups) + + tups = [tuple(x) for x in df[["b", "c", "a"]].values] + tups = com.asarray_tuplesafe(tups) + result = df.groupby(["b", "c", "a"], sort=True).sum() + tm.assert_numpy_array_equal(result.index.values, tups[[2, 1, 0]]) + + df = DataFrame( + { + "a": [0, 1, 2, 0, 1, 2], + "b": [0, 0, 0, 1, 1, 1], + "d": np.random.default_rng(2).standard_normal(6), + } + ) + grouped = df.groupby(["a", "b"])["d"] + result = grouped.sum() + + def _check_groupby(df, result, keys, field, f=lambda x: x.sum()): + tups = [tuple(row) for row in df[keys].values] + tups = com.asarray_tuplesafe(tups) + expected = f(df.groupby(tups)[field]) + for k, v in expected.items(): + assert result[k] == v + + _check_groupby(df, result, ["a", "b"], "d") + + +def test_dont_clobber_name_column(): + df = DataFrame( + {"key": ["a", "a", "a", "b", "b", "b"], "name": ["foo", "bar", "baz"] * 2} + ) + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("key", group_keys=False).apply(lambda x: x) + tm.assert_frame_equal(result, df) + + +def test_skip_group_keys(): + tsf = DataFrame( + np.random.default_rng(2).standard_normal((10, 4)), + columns=Index(list("ABCD"), dtype=object), + index=date_range("2000-01-01", periods=10, freq="B"), + ) + + grouped = tsf.groupby(lambda x: x.month, group_keys=False) + result = grouped.apply(lambda x: x.sort_values(by="A")[:3]) + + pieces = [group.sort_values(by="A")[:3] for key, group in grouped] + + expected = pd.concat(pieces) + tm.assert_frame_equal(result, expected) + + grouped = tsf["A"].groupby(lambda x: x.month, group_keys=False) + result = grouped.apply(lambda x: x.sort_values()[:3]) + + pieces = [group.sort_values()[:3] for key, group in grouped] + + expected = pd.concat(pieces) + tm.assert_series_equal(result, expected) + + +def test_no_nonsense_name(float_frame): + # GH #995 + s = float_frame["C"].copy() + s.name = None + + result = s.groupby(float_frame["A"]).agg("sum") + assert result.name is None + + +def test_multifunc_sum_bug(): + # GH #1065 + x = DataFrame(np.arange(9).reshape(3, 3)) + x["test"] = 0 + x["fl"] = [1.3, 1.5, 1.6] + + grouped = x.groupby("test") + result = grouped.agg({"fl": "sum", 2: "size"}) + assert result["fl"].dtype == np.float64 + + +def test_handle_dict_return_value(df): + def f(group): + return {"max": group.max(), "min": group.min()} + + def g(group): + return Series({"max": group.max(), "min": group.min()}) + + result = df.groupby("A")["C"].apply(f) + expected = df.groupby("A")["C"].apply(g) + + assert isinstance(result, Series) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("grouper", ["A", ["A", "B"]]) +def test_set_group_name(df, grouper): + def f(group): + assert group.name is not None + return group + + def freduce(group): + assert group.name is not None + return group.sum() + + def freducex(x): + return freduce(x) + + grouped = df.groupby(grouper, group_keys=False) + + # make sure all these work + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + grouped.apply(f) + grouped.aggregate(freduce) + grouped.aggregate({"C": freduce, "D": freduce}) + grouped.transform(f) + + grouped["C"].apply(f) + grouped["C"].aggregate(freduce) + grouped["C"].aggregate([freduce, freducex]) + grouped["C"].transform(f) + + +def test_group_name_available_in_inference_pass(): + # gh-15062 + df = DataFrame({"a": [0, 0, 1, 1, 2, 2], "b": np.arange(6)}) + + names = [] + + def f(group): + names.append(group.name) + return group.copy() + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + df.groupby("a", sort=False, group_keys=False).apply(f) + + expected_names = [0, 1, 2] + assert names == expected_names + + +def test_no_dummy_key_names(df): + # see gh-1291 + result = df.groupby(df["A"].values).sum() + assert result.index.name is None + + result2 = df.groupby([df["A"].values, df["B"].values]).sum() + assert result2.index.names == (None, None) + + +def test_groupby_sort_multiindex_series(): + # series multiindex groupby sort argument was not being passed through + # _compress_group_index + # GH 9444 + index = MultiIndex( + levels=[[1, 2], [1, 2]], + codes=[[0, 0, 0, 0, 1, 1], [1, 1, 0, 0, 0, 0]], + names=["a", "b"], + ) + mseries = Series([0, 1, 2, 3, 4, 5], index=index) + index = MultiIndex( + levels=[[1, 2], [1, 2]], codes=[[0, 0, 1], [1, 0, 0]], names=["a", "b"] + ) + mseries_result = Series([0, 2, 4], index=index) + + result = mseries.groupby(level=["a", "b"], sort=False).first() + tm.assert_series_equal(result, mseries_result) + result = mseries.groupby(level=["a", "b"], sort=True).first() + tm.assert_series_equal(result, mseries_result.sort_index()) + + +def test_groupby_reindex_inside_function(): + periods = 1000 + ind = date_range(start="2012/1/1", freq="5min", periods=periods) + df = DataFrame({"high": np.arange(periods), "low": np.arange(periods)}, index=ind) + + def agg_before(func, fix=False): + """ + Run an aggregate func on the subset of data. + """ + + def _func(data): + d = data.loc[data.index.map(lambda x: x.hour < 11)].dropna() + if fix: + data[data.index[0]] + if len(d) == 0: + return None + return func(d) + + return _func + + grouped = df.groupby(lambda x: datetime(x.year, x.month, x.day)) + closure_bad = grouped.agg({"high": agg_before(np.max)}) + closure_good = grouped.agg({"high": agg_before(np.max, True)}) + + tm.assert_frame_equal(closure_bad, closure_good) + + +def test_groupby_multiindex_missing_pair(): + # GH9049 + df = DataFrame( + { + "group1": ["a", "a", "a", "b"], + "group2": ["c", "c", "d", "c"], + "value": [1, 1, 1, 5], + } + ) + df = df.set_index(["group1", "group2"]) + df_grouped = df.groupby(level=["group1", "group2"], sort=True) + + res = df_grouped.agg("sum") + idx = MultiIndex.from_tuples( + [("a", "c"), ("a", "d"), ("b", "c")], names=["group1", "group2"] + ) + exp = DataFrame([[2], [1], [5]], index=idx, columns=["value"]) + + tm.assert_frame_equal(res, exp) + + +def test_groupby_multiindex_not_lexsorted(): + # GH 11640 + + # define the lexsorted version + lexsorted_mi = MultiIndex.from_tuples( + [("a", ""), ("b1", "c1"), ("b2", "c2")], names=["b", "c"] + ) + lexsorted_df = DataFrame([[1, 3, 4]], columns=lexsorted_mi) + assert lexsorted_df.columns._is_lexsorted() + + # define the non-lexsorted version + not_lexsorted_df = DataFrame( + columns=["a", "b", "c", "d"], data=[[1, "b1", "c1", 3], [1, "b2", "c2", 4]] + ) + not_lexsorted_df = not_lexsorted_df.pivot_table( + index="a", columns=["b", "c"], values="d" + ) + not_lexsorted_df = not_lexsorted_df.reset_index() + assert not not_lexsorted_df.columns._is_lexsorted() + + expected = lexsorted_df.groupby("a").mean() + with tm.assert_produces_warning(PerformanceWarning): + result = not_lexsorted_df.groupby("a").mean() + tm.assert_frame_equal(expected, result) + + # a transforming function should work regardless of sort + # GH 14776 + df = DataFrame( + {"x": ["a", "a", "b", "a"], "y": [1, 1, 2, 2], "z": [1, 2, 3, 4]} + ).set_index(["x", "y"]) + assert not df.index._is_lexsorted() + + for level in [0, 1, [0, 1]]: + for sort in [False, True]: + result = df.groupby(level=level, sort=sort, group_keys=False).apply( + DataFrame.drop_duplicates + ) + expected = df + tm.assert_frame_equal(expected, result) + + result = ( + df.sort_index() + .groupby(level=level, sort=sort, group_keys=False) + .apply(DataFrame.drop_duplicates) + ) + expected = df.sort_index() + tm.assert_frame_equal(expected, result) + + +def test_index_label_overlaps_location(): + # checking we don't have any label/location confusion in the + # wake of GH5375 + df = DataFrame(list("ABCDE"), index=[2, 0, 2, 1, 1]) + g = df.groupby(list("ababb")) + actual = g.filter(lambda x: len(x) > 2) + expected = df.iloc[[1, 3, 4]] + tm.assert_frame_equal(actual, expected) + + ser = df[0] + g = ser.groupby(list("ababb")) + actual = g.filter(lambda x: len(x) > 2) + expected = ser.take([1, 3, 4]) + tm.assert_series_equal(actual, expected) + + # and again, with a generic Index of floats + df.index = df.index.astype(float) + g = df.groupby(list("ababb")) + actual = g.filter(lambda x: len(x) > 2) + expected = df.iloc[[1, 3, 4]] + tm.assert_frame_equal(actual, expected) + + ser = df[0] + g = ser.groupby(list("ababb")) + actual = g.filter(lambda x: len(x) > 2) + expected = ser.take([1, 3, 4]) + tm.assert_series_equal(actual, expected) + + +def test_transform_doesnt_clobber_ints(): + # GH 7972 + n = 6 + x = np.arange(n) + df = DataFrame({"a": x // 2, "b": 2.0 * x, "c": 3.0 * x}) + df2 = DataFrame({"a": x // 2 * 1.0, "b": 2.0 * x, "c": 3.0 * x}) + + gb = df.groupby("a") + result = gb.transform("mean") + + gb2 = df2.groupby("a") + expected = gb2.transform("mean") + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "sort_column", + ["ints", "floats", "strings", ["ints", "floats"], ["ints", "strings"]], +) +@pytest.mark.parametrize( + "group_column", ["int_groups", "string_groups", ["int_groups", "string_groups"]] +) +def test_groupby_preserves_sort(sort_column, group_column): + # Test to ensure that groupby always preserves sort order of original + # object. Issue #8588 and #9651 + + df = DataFrame( + { + "int_groups": [3, 1, 0, 1, 0, 3, 3, 3], + "string_groups": ["z", "a", "z", "a", "a", "g", "g", "g"], + "ints": [8, 7, 4, 5, 2, 9, 1, 1], + "floats": [2.3, 5.3, 6.2, -2.4, 2.2, 1.1, 1.1, 5], + "strings": ["z", "d", "a", "e", "word", "word2", "42", "47"], + } + ) + + # Try sorting on different types and with different group types + + df = df.sort_values(by=sort_column) + g = df.groupby(group_column) + + def test_sort(x): + tm.assert_frame_equal(x, x.sort_values(by=sort_column)) + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + g.apply(test_sort) + + +def test_pivot_table_values_key_error(): + # This test is designed to replicate the error in issue #14938 + df = DataFrame( + { + "eventDate": date_range(datetime.today(), periods=20, freq="ME").tolist(), + "thename": range(20), + } + ) + + df["year"] = df.set_index("eventDate").index.year + df["month"] = df.set_index("eventDate").index.month + + with pytest.raises(KeyError, match="'badname'"): + df.reset_index().pivot_table( + index="year", columns="month", values="badname", aggfunc="count" + ) + + +@pytest.mark.parametrize("columns", ["C", ["C"]]) +@pytest.mark.parametrize("keys", [["A"], ["A", "B"]]) +@pytest.mark.parametrize( + "values", + [ + [True], + [0], + [0.0], + ["a"], + Categorical([0]), + [to_datetime(0)], + date_range(0, 1, 1, tz="US/Eastern"), + pd.period_range("2016-01-01", periods=3, freq="D"), + pd.array([0], dtype="Int64"), + pd.array([0], dtype="Float64"), + pd.array([False], dtype="boolean"), + ], + ids=[ + "bool", + "int", + "float", + "str", + "cat", + "dt64", + "dt64tz", + "period", + "Int64", + "Float64", + "boolean", + ], +) +@pytest.mark.parametrize("method", ["attr", "agg", "apply"]) +@pytest.mark.parametrize( + "op", ["idxmax", "idxmin", "min", "max", "sum", "prod", "skew"] +) +def test_empty_groupby( + columns, keys, values, method, op, using_array_manager, dropna, using_infer_string +): + # GH8093 & GH26411 + override_dtype = None + + if isinstance(values, BooleanArray) and op in ["sum", "prod"]: + # We expect to get Int64 back for these + override_dtype = "Int64" + + if isinstance(values[0], bool) and op in ("prod", "sum"): + # sum/product of bools is an integer + override_dtype = "int64" + + df = DataFrame({"A": values, "B": values, "C": values}, columns=list("ABC")) + + if hasattr(values, "dtype"): + # check that we did the construction right + assert (df.dtypes == values.dtype).all() + + df = df.iloc[:0] + + gb = df.groupby(keys, group_keys=False, dropna=dropna, observed=False)[columns] + + def get_result(**kwargs): + if method == "attr": + return getattr(gb, op)(**kwargs) + else: + return getattr(gb, method)(op, **kwargs) + + def get_categorical_invalid_expected(): + # Categorical is special without 'observed=True', we get an NaN entry + # corresponding to the unobserved group. If we passed observed=True + # to groupby, expected would just be 'df.set_index(keys)[columns]' + # as below + lev = Categorical([0], dtype=values.dtype) + if len(keys) != 1: + idx = MultiIndex.from_product([lev, lev], names=keys) + else: + # all columns are dropped, but we end up with one row + # Categorical is special without 'observed=True' + idx = Index(lev, name=keys[0]) + + if using_infer_string: + columns = Index([], dtype="str") + else: + columns = [] + expected = DataFrame([], columns=columns, index=idx) + return expected + + is_per = isinstance(df.dtypes.iloc[0], pd.PeriodDtype) + is_dt64 = df.dtypes.iloc[0].kind == "M" + is_cat = isinstance(values, Categorical) + is_str = isinstance(df.dtypes.iloc[0], pd.StringDtype) + + if ( + isinstance(values, Categorical) + and not values.ordered + and op in ["min", "max", "idxmin", "idxmax"] + ): + if op in ["min", "max"]: + msg = f"Cannot perform {op} with non-ordered Categorical" + klass = TypeError + else: + msg = f"Can't get {op} of an empty group due to unobserved categories" + klass = ValueError + with pytest.raises(klass, match=msg): + get_result() + + if op in ["min", "max", "idxmin", "idxmax"] and isinstance(columns, list): + # i.e. DataframeGroupBy, not SeriesGroupBy + result = get_result(numeric_only=True) + expected = get_categorical_invalid_expected() + tm.assert_equal(result, expected) + return + + if op in ["prod", "sum", "skew"]: + # ops that require more than just ordered-ness + if is_dt64 or is_cat or is_per or (is_str and op != "sum"): + # GH#41291 + # datetime64 -> prod and sum are invalid + if is_dt64: + msg = "datetime64 type does not support" + elif is_per: + msg = "Period type does not support" + elif is_str: + msg = f"dtype 'str' does not support operation '{op}'" + else: + msg = "category type does not support" + if op == "skew": + msg = "|".join([msg, "does not support reduction 'skew'"]) + with pytest.raises(TypeError, match=msg): + get_result() + + if not isinstance(columns, list): + # i.e. SeriesGroupBy + return + elif op == "skew": + # TODO: test the numeric_only=True case + return + else: + # i.e. op in ["prod", "sum"]: + # i.e. DataFrameGroupBy + # ops that require more than just ordered-ness + # GH#41291 + result = get_result(numeric_only=True) + + # with numeric_only=True, these are dropped, and we get + # an empty DataFrame back + expected = df.set_index(keys)[[]] + if is_cat: + expected = get_categorical_invalid_expected() + tm.assert_equal(result, expected) + return + + result = get_result() + expected = df.set_index(keys)[columns] + if op in ["idxmax", "idxmin"]: + expected = expected.astype(df.index.dtype) + if override_dtype is not None: + expected = expected.astype(override_dtype) + if len(keys) == 1: + expected.index.name = keys[0] + tm.assert_equal(result, expected) + + +def test_empty_groupby_apply_nonunique_columns(): + # GH#44417 + df = DataFrame(np.random.default_rng(2).standard_normal((0, 4))) + df[3] = df[3].astype(np.int64) + df.columns = [0, 1, 2, 0] + gb = df.groupby(df[1], group_keys=False) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + res = gb.apply(lambda x: x) + assert (res.dtypes == df.dtypes).all() + + +def test_tuple_as_grouping(): + # https://github.com/pandas-dev/pandas/issues/18314 + df = DataFrame( + { + ("a", "b"): [1, 1, 1, 1], + "a": [2, 2, 2, 2], + "b": [2, 2, 2, 2], + "c": [1, 1, 1, 1], + } + ) + + with pytest.raises(KeyError, match=r"('a', 'b')"): + df[["a", "b", "c"]].groupby(("a", "b")) + + result = df.groupby(("a", "b"))["c"].sum() + expected = Series([4], name="c", index=Index([1], name=("a", "b"))) + tm.assert_series_equal(result, expected) + + +def test_tuple_correct_keyerror(): + # https://github.com/pandas-dev/pandas/issues/18798 + df = DataFrame(1, index=range(3), columns=MultiIndex.from_product([[1, 2], [3, 4]])) + with pytest.raises(KeyError, match=r"^\(7, 8\)$"): + df.groupby((7, 8)).mean() + + +def test_groupby_agg_ohlc_non_first(): + # GH 21716 + df = DataFrame( + [[1], [1]], + columns=Index(["foo"], name="mycols"), + index=date_range("2018-01-01", periods=2, freq="D", name="dti"), + ) + + expected = DataFrame( + [[1, 1, 1, 1, 1], [1, 1, 1, 1, 1]], + columns=MultiIndex.from_tuples( + ( + ("foo", "sum", "foo"), + ("foo", "ohlc", "open"), + ("foo", "ohlc", "high"), + ("foo", "ohlc", "low"), + ("foo", "ohlc", "close"), + ), + names=["mycols", None, None], + ), + index=date_range("2018-01-01", periods=2, freq="D", name="dti"), + ) + + result = df.groupby(Grouper(freq="D")).agg(["sum", "ohlc"]) + + tm.assert_frame_equal(result, expected) + + +def test_groupby_multiindex_nat(): + # GH 9236 + values = [ + (pd.NaT, "a"), + (datetime(2012, 1, 2), "a"), + (datetime(2012, 1, 2), "b"), + (datetime(2012, 1, 3), "a"), + ] + mi = MultiIndex.from_tuples(values, names=["date", None]) + ser = Series([3, 2, 2.5, 4], index=mi) + + result = ser.groupby(level=1).mean() + expected = Series([3.0, 2.5], index=["a", "b"]) + tm.assert_series_equal(result, expected) + + +def test_groupby_empty_list_raises(): + # GH 5289 + values = zip(range(10), range(10)) + df = DataFrame(values, columns=["apple", "b"]) + msg = "Grouper and axis must be same length" + with pytest.raises(ValueError, match=msg): + df.groupby([[]]) + + +def test_groupby_multiindex_series_keys_len_equal_group_axis(): + # GH 25704 + index_array = [["x", "x"], ["a", "b"], ["k", "k"]] + index_names = ["first", "second", "third"] + ri = MultiIndex.from_arrays(index_array, names=index_names) + s = Series(data=[1, 2], index=ri) + result = s.groupby(["first", "third"]).sum() + + index_array = [["x"], ["k"]] + index_names = ["first", "third"] + ei = MultiIndex.from_arrays(index_array, names=index_names) + expected = Series([3], index=ei) + + tm.assert_series_equal(result, expected) + + +def test_groupby_groups_in_BaseGrouper(): + # GH 26326 + # Test if DataFrame grouped with a pandas.Grouper has correct groups + mi = MultiIndex.from_product([["A", "B"], ["C", "D"]], names=["alpha", "beta"]) + df = DataFrame({"foo": [1, 2, 1, 2], "bar": [1, 2, 3, 4]}, index=mi) + result = df.groupby([Grouper(level="alpha"), "beta"]) + expected = df.groupby(["alpha", "beta"]) + assert result.groups == expected.groups + + result = df.groupby(["beta", Grouper(level="alpha")]) + expected = df.groupby(["beta", "alpha"]) + assert result.groups == expected.groups + + +@pytest.mark.parametrize("group_name", ["x", ["x"]]) +def test_groupby_axis_1(group_name): + # GH 27614 + df = DataFrame( + np.arange(12).reshape(3, 4), index=[0, 1, 0], columns=[10, 20, 10, 20] + ) + df.index.name = "y" + df.columns.name = "x" + + depr_msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + gb = df.groupby(group_name, axis=1) + + results = gb.sum() + expected = df.T.groupby(group_name).sum().T + tm.assert_frame_equal(results, expected) + + # test on MI column + iterables = [["bar", "baz", "foo"], ["one", "two"]] + mi = MultiIndex.from_product(iterables=iterables, names=["x", "x1"]) + df = DataFrame(np.arange(18).reshape(3, 6), index=[0, 1, 0], columns=mi) + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + gb = df.groupby(group_name, axis=1) + results = gb.sum() + expected = df.T.groupby(group_name).sum().T + tm.assert_frame_equal(results, expected) + + +@pytest.mark.parametrize( + "op, expected", + [ + ( + "shift", + { + "time": [ + None, + None, + Timestamp("2019-01-01 12:00:00"), + Timestamp("2019-01-01 12:30:00"), + None, + None, + ] + }, + ), + ( + "bfill", + { + "time": [ + Timestamp("2019-01-01 12:00:00"), + Timestamp("2019-01-01 12:30:00"), + Timestamp("2019-01-01 14:00:00"), + Timestamp("2019-01-01 14:30:00"), + Timestamp("2019-01-01 14:00:00"), + Timestamp("2019-01-01 14:30:00"), + ] + }, + ), + ( + "ffill", + { + "time": [ + Timestamp("2019-01-01 12:00:00"), + Timestamp("2019-01-01 12:30:00"), + Timestamp("2019-01-01 12:00:00"), + Timestamp("2019-01-01 12:30:00"), + Timestamp("2019-01-01 14:00:00"), + Timestamp("2019-01-01 14:30:00"), + ] + }, + ), + ], +) +def test_shift_bfill_ffill_tz(tz_naive_fixture, op, expected): + # GH19995, GH27992: Check that timezone does not drop in shift, bfill, and ffill + tz = tz_naive_fixture + data = { + "id": ["A", "B", "A", "B", "A", "B"], + "time": [ + Timestamp("2019-01-01 12:00:00"), + Timestamp("2019-01-01 12:30:00"), + None, + None, + Timestamp("2019-01-01 14:00:00"), + Timestamp("2019-01-01 14:30:00"), + ], + } + df = DataFrame(data).assign(time=lambda x: x.time.dt.tz_localize(tz)) + + grouped = df.groupby("id") + result = getattr(grouped, op)() + expected = DataFrame(expected).assign(time=lambda x: x.time.dt.tz_localize(tz)) + tm.assert_frame_equal(result, expected) + + +def test_groupby_only_none_group(): + # see GH21624 + # this was crashing with "ValueError: Length of passed values is 1, index implies 0" + df = DataFrame({"g": [None], "x": 1}) + actual = df.groupby("g")["x"].transform("sum") + expected = Series([np.nan], name="x") + + tm.assert_series_equal(actual, expected) + + +def test_groupby_duplicate_index(): + # GH#29189 the groupby call here used to raise + ser = Series([2, 5, 6, 8], index=[2.0, 4.0, 4.0, 5.0]) + gb = ser.groupby(level=0) + + result = gb.mean() + expected = Series([2, 5.5, 8], index=[2.0, 4.0, 5.0]) + tm.assert_series_equal(result, expected) + + +def test_group_on_empty_multiindex(transformation_func, request): + # GH 47787 + # With one row, those are transforms so the schema should be the same + df = DataFrame( + data=[[1, Timestamp("today"), 3, 4]], + columns=["col_1", "col_2", "col_3", "col_4"], + ) + df["col_3"] = df["col_3"].astype(int) + df["col_4"] = df["col_4"].astype(int) + df = df.set_index(["col_1", "col_2"]) + if transformation_func == "fillna": + args = ("ffill",) + else: + args = () + warn = FutureWarning if transformation_func == "fillna" else None + warn_msg = "DataFrameGroupBy.fillna is deprecated" + with tm.assert_produces_warning(warn, match=warn_msg): + result = df.iloc[:0].groupby(["col_1"]).transform(transformation_func, *args) + with tm.assert_produces_warning(warn, match=warn_msg): + expected = df.groupby(["col_1"]).transform(transformation_func, *args).iloc[:0] + if transformation_func in ("diff", "shift"): + expected = expected.astype(int) + tm.assert_equal(result, expected) + + warn_msg = "SeriesGroupBy.fillna is deprecated" + with tm.assert_produces_warning(warn, match=warn_msg): + result = ( + df["col_3"] + .iloc[:0] + .groupby(["col_1"]) + .transform(transformation_func, *args) + ) + warn_msg = "SeriesGroupBy.fillna is deprecated" + with tm.assert_produces_warning(warn, match=warn_msg): + expected = ( + df["col_3"] + .groupby(["col_1"]) + .transform(transformation_func, *args) + .iloc[:0] + ) + if transformation_func in ("diff", "shift"): + expected = expected.astype(int) + tm.assert_equal(result, expected) + + +def test_groupby_crash_on_nunique(axis): + # Fix following 30253 + dti = date_range("2016-01-01", periods=2, name="foo") + df = DataFrame({("A", "B"): [1, 2], ("A", "C"): [1, 3], ("D", "B"): [0, 0]}) + df.columns.names = ("bar", "baz") + df.index = dti + + axis_number = df._get_axis_number(axis) + if not axis_number: + df = df.T + msg = "The 'axis' keyword in DataFrame.groupby is deprecated" + else: + msg = "DataFrame.groupby with axis=1 is deprecated" + + with tm.assert_produces_warning(FutureWarning, match=msg): + gb = df.groupby(axis=axis_number, level=0) + result = gb.nunique() + + expected = DataFrame({"A": [1, 2], "D": [1, 1]}, index=dti) + expected.columns.name = "bar" + if not axis_number: + expected = expected.T + + tm.assert_frame_equal(result, expected) + + if axis_number == 0: + # same thing, but empty columns + with tm.assert_produces_warning(FutureWarning, match=msg): + gb2 = df[[]].groupby(axis=axis_number, level=0) + exp = expected[[]] + else: + # same thing, but empty rows + with tm.assert_produces_warning(FutureWarning, match=msg): + gb2 = df.loc[[]].groupby(axis=axis_number, level=0) + # default for empty when we can't infer a dtype is float64 + exp = expected.loc[[]].astype(np.float64) + + res = gb2.nunique() + tm.assert_frame_equal(res, exp) + + +def test_groupby_list_level(): + # GH 9790 + expected = DataFrame(np.arange(0, 9).reshape(3, 3), dtype=float) + result = expected.groupby(level=[0]).mean() + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "max_seq_items, expected", + [ + (5, "{0: [0], 1: [1], 2: [2], 3: [3], 4: [4]}"), + (4, "{0: [0], 1: [1], 2: [2], 3: [3], ...}"), + (1, "{0: [0], ...}"), + ], +) +def test_groups_repr_truncates(max_seq_items, expected): + # GH 1135 + df = DataFrame(np.random.default_rng(2).standard_normal((5, 1))) + df["a"] = df.index + + with pd.option_context("display.max_seq_items", max_seq_items): + result = df.groupby("a").groups.__repr__() + assert result == expected + + result = df.groupby(np.array(df.a)).groups.__repr__() + assert result == expected + + +def test_group_on_two_row_multiindex_returns_one_tuple_key(): + # GH 18451 + df = DataFrame([{"a": 1, "b": 2, "c": 99}, {"a": 1, "b": 2, "c": 88}]) + df = df.set_index(["a", "b"]) + + grp = df.groupby(["a", "b"]) + result = grp.indices + expected = {(1, 2): np.array([0, 1], dtype=np.int64)} + + assert len(result) == 1 + key = (1, 2) + assert (result[key] == expected[key]).all() + + +@pytest.mark.parametrize( + "klass, attr, value", + [ + (DataFrame, "level", "a"), + (DataFrame, "as_index", False), + (DataFrame, "sort", False), + (DataFrame, "group_keys", False), + (DataFrame, "observed", True), + (DataFrame, "dropna", False), + (Series, "level", "a"), + (Series, "as_index", False), + (Series, "sort", False), + (Series, "group_keys", False), + (Series, "observed", True), + (Series, "dropna", False), + ], +) +def test_subsetting_columns_keeps_attrs(klass, attr, value): + # GH 9959 - When subsetting columns, don't drop attributes + df = DataFrame({"a": [1], "b": [2], "c": [3]}) + if attr != "axis": + df = df.set_index("a") + + expected = df.groupby("a", **{attr: value}) + result = expected[["b"]] if klass is DataFrame else expected["b"] + assert getattr(result, attr) == getattr(expected, attr) + + +def test_subsetting_columns_axis_1(): + # GH 37725 + df = DataFrame({"A": [1], "B": [2], "C": [3]}) + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + g = df.groupby([0, 0, 1], axis=1) + match = "Cannot subset columns when using axis=1" + with pytest.raises(ValueError, match=match): + g[["A", "B"]].sum() + + +@pytest.mark.parametrize("func", ["sum", "any", "shift"]) +def test_groupby_column_index_name_lost(func): + # GH: 29764 groupby loses index sometimes + expected = Index(["a"], name="idx") + df = DataFrame([[1]], columns=expected) + df_grouped = df.groupby([1]) + result = getattr(df_grouped, func)().columns + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize( + "infer_string", + [ + False, + pytest.param(True, marks=td.skip_if_no("pyarrow")), + ], +) +def test_groupby_duplicate_columns(infer_string): + # GH: 31735 + if infer_string: + pytest.importorskip("pyarrow") + df = DataFrame( + {"A": ["f", "e", "g", "h"], "B": ["a", "b", "c", "d"], "C": [1, 2, 3, 4]} + ).astype(object) + df.columns = ["A", "B", "B"] + with pd.option_context("future.infer_string", infer_string): + result = df.groupby([0, 0, 0, 0]).min() + expected = DataFrame( + [["e", "a", 1]], index=np.array([0]), columns=["A", "B", "B"], dtype=object + ) + tm.assert_frame_equal(result, expected) + + +def test_groupby_series_with_tuple_name(): + # GH 37755 + ser = Series([1, 2, 3, 4], index=[1, 1, 2, 2], name=("a", "a")) + ser.index.name = ("b", "b") + result = ser.groupby(level=0).last() + expected = Series([2, 4], index=[1, 2], name=("a", "a")) + expected.index.name = ("b", "b") + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "func, values", [("sum", [97.0, 98.0]), ("mean", [24.25, 24.5])] +) +def test_groupby_numerical_stability_sum_mean(func, values): + # GH#38778 + data = [1e16, 1e16, 97, 98, -5e15, -5e15, -5e15, -5e15] + df = DataFrame({"group": [1, 2] * 4, "a": data, "b": data}) + result = getattr(df.groupby("group"), func)() + expected = DataFrame({"a": values, "b": values}, index=Index([1, 2], name="group")) + tm.assert_frame_equal(result, expected) + + +def test_groupby_numerical_stability_cumsum(): + # GH#38934 + data = [1e16, 1e16, 97, 98, -5e15, -5e15, -5e15, -5e15] + df = DataFrame({"group": [1, 2] * 4, "a": data, "b": data}) + result = df.groupby("group").cumsum() + exp_data = ( + [1e16] * 2 + [1e16 + 96, 1e16 + 98] + [5e15 + 97, 5e15 + 98] + [97.0, 98.0] + ) + expected = DataFrame({"a": exp_data, "b": exp_data}) + tm.assert_frame_equal(result, expected, check_exact=True) + + +def test_groupby_cumsum_skipna_false(): + # GH#46216 don't propagate np.nan above the diagonal + arr = np.random.default_rng(2).standard_normal((5, 5)) + df = DataFrame(arr) + for i in range(5): + df.iloc[i, i] = np.nan + + df["A"] = 1 + gb = df.groupby("A") + + res = gb.cumsum(skipna=False) + + expected = df[[0, 1, 2, 3, 4]].cumsum(skipna=False) + tm.assert_frame_equal(res, expected) + + +def test_groupby_cumsum_timedelta64(): + # GH#46216 don't ignore is_datetimelike in libgroupby.group_cumsum + dti = date_range("2016-01-01", periods=5) + ser = Series(dti) - dti[0] + ser[2] = pd.NaT + + df = DataFrame({"A": 1, "B": ser}) + gb = df.groupby("A") + + res = gb.cumsum(numeric_only=False, skipna=True) + exp = DataFrame({"B": [ser[0], ser[1], pd.NaT, ser[4], ser[4] * 2]}) + tm.assert_frame_equal(res, exp) + + res = gb.cumsum(numeric_only=False, skipna=False) + exp = DataFrame({"B": [ser[0], ser[1], pd.NaT, pd.NaT, pd.NaT]}) + tm.assert_frame_equal(res, exp) + + +def test_groupby_mean_duplicate_index(rand_series_with_duplicate_datetimeindex): + dups = rand_series_with_duplicate_datetimeindex + result = dups.groupby(level=0).mean() + expected = dups.groupby(dups.index).mean() + tm.assert_series_equal(result, expected) + + +def test_groupby_all_nan_groups_drop(): + # GH 15036 + s = Series([1, 2, 3], [np.nan, np.nan, np.nan]) + result = s.groupby(s.index).sum() + expected = Series([], index=Index([], dtype=np.float64), dtype=np.int64) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("numeric_only", [True, False]) +def test_groupby_empty_multi_column(as_index, numeric_only): + # GH 15106 & GH 41998 + df = DataFrame(data=[], columns=["A", "B", "C"]) + gb = df.groupby(["A", "B"], as_index=as_index) + result = gb.sum(numeric_only=numeric_only) + if as_index: + index = MultiIndex([[], []], [[], []], names=["A", "B"]) + columns = ["C"] if not numeric_only else Index([], dtype="str") + else: + index = RangeIndex(0) + columns = ["A", "B", "C"] if not numeric_only else ["A", "B"] + expected = DataFrame([], columns=columns, index=index) + tm.assert_frame_equal(result, expected) + + +def test_groupby_aggregation_non_numeric_dtype(): + # GH #43108 + df = DataFrame( + [["M", [1]], ["M", [1]], ["W", [10]], ["W", [20]]], columns=["MW", "v"] + ) + + expected = DataFrame( + { + "v": [[1, 1], [10, 20]], + }, + index=Index(["M", "W"], name="MW"), + ) + + gb = df.groupby(by=["MW"]) + result = gb.sum() + tm.assert_frame_equal(result, expected) + + +def test_groupby_aggregation_multi_non_numeric_dtype(): + # GH #42395 + df = DataFrame( + { + "x": [1, 0, 1, 1, 0], + "y": [Timedelta(i, "days") for i in range(1, 6)], + "z": [Timedelta(i * 10, "days") for i in range(1, 6)], + } + ) + + expected = DataFrame( + { + "y": [Timedelta(i, "days") for i in range(7, 9)], + "z": [Timedelta(i * 10, "days") for i in range(7, 9)], + }, + index=Index([0, 1], dtype="int64", name="x"), + ) + + gb = df.groupby(by=["x"]) + result = gb.sum() + tm.assert_frame_equal(result, expected) + + +def test_groupby_aggregation_numeric_with_non_numeric_dtype(): + # GH #43108 + df = DataFrame( + { + "x": [1, 0, 1, 1, 0], + "y": [Timedelta(i, "days") for i in range(1, 6)], + "z": list(range(1, 6)), + } + ) + + expected = DataFrame( + {"y": [Timedelta(7, "days"), Timedelta(8, "days")], "z": [7, 8]}, + index=Index([0, 1], dtype="int64", name="x"), + ) + + gb = df.groupby(by=["x"]) + result = gb.sum() + tm.assert_frame_equal(result, expected) + + +def test_groupby_filtered_df_std(): + # GH 16174 + dicts = [ + {"filter_col": False, "groupby_col": True, "bool_col": True, "float_col": 10.5}, + {"filter_col": True, "groupby_col": True, "bool_col": True, "float_col": 20.5}, + {"filter_col": True, "groupby_col": True, "bool_col": True, "float_col": 30.5}, + ] + df = DataFrame(dicts) + + df_filter = df[df["filter_col"] == True] # noqa: E712 + dfgb = df_filter.groupby("groupby_col") + result = dfgb.std() + expected = DataFrame( + [[0.0, 0.0, 7.071068]], + columns=["filter_col", "bool_col", "float_col"], + index=Index([True], name="groupby_col"), + ) + tm.assert_frame_equal(result, expected) + + +def test_datetime_categorical_multikey_groupby_indices(): + # GH 26859 + df = DataFrame( + { + "a": Series(list("abc")), + "b": Series( + to_datetime(["2018-01-01", "2018-02-01", "2018-03-01"]), + dtype="category", + ), + "c": Categorical.from_codes([-1, 0, 1], categories=[0, 1]), + } + ) + result = df.groupby(["a", "b"], observed=False).indices + expected = { + ("a", Timestamp("2018-01-01 00:00:00")): np.array([0]), + ("b", Timestamp("2018-02-01 00:00:00")): np.array([1]), + ("c", Timestamp("2018-03-01 00:00:00")): np.array([2]), + } + assert result == expected + + +def test_rolling_wrong_param_min_period(): + # GH34037 + name_l = ["Alice"] * 5 + ["Bob"] * 5 + val_l = [np.nan, np.nan, 1, 2, 3] + [np.nan, 1, 2, 3, 4] + test_df = DataFrame([name_l, val_l]).T + test_df.columns = ["name", "val"] + + result_error_msg = ( + r"^[a-zA-Z._]*\(\) got an unexpected keyword argument 'min_period'" + ) + with pytest.raises(TypeError, match=result_error_msg): + test_df.groupby("name")["val"].rolling(window=2, min_period=1).sum() + + +def test_by_column_values_with_same_starting_value(any_string_dtype): + # GH29635 + df = DataFrame( + { + "Name": ["Thomas", "Thomas", "Thomas John"], + "Credit": [1200, 1300, 900], + "Mood": Series(["sad", "happy", "happy"], dtype=any_string_dtype), + } + ) + aggregate_details = {"Mood": Series.mode, "Credit": "sum"} + + result = df.groupby(["Name"]).agg(aggregate_details) + expected_result = DataFrame( + { + "Mood": [["happy", "sad"], "happy"], + "Credit": [2500, 900], + "Name": ["Thomas", "Thomas John"], + } + ).set_index("Name") + + tm.assert_frame_equal(result, expected_result) + + +def test_groupby_none_in_first_mi_level(): + # GH#47348 + arr = [[None, 1, 0, 1], [2, 3, 2, 3]] + ser = Series(1, index=MultiIndex.from_arrays(arr, names=["a", "b"])) + result = ser.groupby(level=[0, 1]).sum() + expected = Series( + [1, 2], MultiIndex.from_tuples([(0.0, 2), (1.0, 3)], names=["a", "b"]) + ) + tm.assert_series_equal(result, expected) + + +def test_groupby_none_column_name(using_infer_string): + # GH#47348 + df = DataFrame({None: [1, 1, 2, 2], "b": [1, 1, 2, 3], "c": [4, 5, 6, 7]}) + by = [np.nan] if using_infer_string else [None] + gb = df.groupby(by=by) + result = gb.sum() + expected = DataFrame({"b": [2, 5], "c": [9, 13]}, index=Index([1, 2], name=by[0])) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("selection", [None, "a", ["a"]]) +def test_single_element_list_grouping(selection): + # GH#42795, GH#53500 + df = DataFrame({"a": [1, 2], "b": [np.nan, 5], "c": [np.nan, 2]}, index=["x", "y"]) + grouped = df.groupby(["a"]) if selection is None else df.groupby(["a"])[selection] + result = [key for key, _ in grouped] + + expected = [(1,), (2,)] + assert result == expected + + +def test_groupby_string_dtype(): + # GH 40148 + df = DataFrame({"str_col": ["a", "b", "c", "a"], "num_col": [1, 2, 3, 2]}) + df["str_col"] = df["str_col"].astype("string") + expected = DataFrame( + { + "str_col": [ + "a", + "b", + "c", + ], + "num_col": [1.5, 2.0, 3.0], + } + ) + expected["str_col"] = expected["str_col"].astype("string") + grouped = df.groupby("str_col", as_index=False) + result = grouped.mean() + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "level_arg, multiindex", [([0], False), ((0,), False), ([0], True), ((0,), True)] +) +def test_single_element_listlike_level_grouping_deprecation(level_arg, multiindex): + # GH 51583 + df = DataFrame({"a": [1, 2], "b": [3, 4], "c": [5, 6]}, index=["x", "y"]) + if multiindex: + df = df.set_index(["a", "b"]) + depr_msg = ( + "Creating a Groupby object with a length-1 list-like " + "level parameter will yield indexes as tuples in a future version. " + "To keep indexes as scalars, create Groupby objects with " + "a scalar level parameter instead." + ) + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + [key for key, _ in df.groupby(level=level_arg)] + + +@pytest.mark.parametrize("func", ["sum", "cumsum", "cumprod", "prod"]) +def test_groupby_avoid_casting_to_float(func): + # GH#37493 + val = 922337203685477580 + df = DataFrame({"a": 1, "b": [val]}) + result = getattr(df.groupby("a"), func)() - val + expected = DataFrame({"b": [0]}, index=Index([1], name="a")) + if func in ["cumsum", "cumprod"]: + expected = expected.reset_index(drop=True) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("func, val", [("sum", 3), ("prod", 2)]) +def test_groupby_sum_support_mask(any_numeric_ea_dtype, func, val): + # GH#37493 + df = DataFrame({"a": 1, "b": [1, 2, pd.NA]}, dtype=any_numeric_ea_dtype) + result = getattr(df.groupby("a"), func)() + expected = DataFrame( + {"b": [val]}, + index=Index([1], name="a", dtype=any_numeric_ea_dtype), + dtype=any_numeric_ea_dtype, + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("val, dtype", [(111, "int"), (222, "uint")]) +def test_groupby_overflow(val, dtype): + # GH#37493 + df = DataFrame({"a": 1, "b": [val, val]}, dtype=f"{dtype}8") + result = df.groupby("a").sum() + expected = DataFrame( + {"b": [val * 2]}, + index=Index([1], name="a", dtype=f"{dtype}8"), + dtype=f"{dtype}64", + ) + tm.assert_frame_equal(result, expected) + + result = df.groupby("a").cumsum() + expected = DataFrame({"b": [val, val * 2]}, dtype=f"{dtype}64") + tm.assert_frame_equal(result, expected) + + result = df.groupby("a").prod() + expected = DataFrame( + {"b": [val * val]}, + index=Index([1], name="a", dtype=f"{dtype}8"), + dtype=f"{dtype}64", + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("skipna, val", [(True, 3), (False, pd.NA)]) +def test_groupby_cumsum_mask(any_numeric_ea_dtype, skipna, val): + # GH#37493 + df = DataFrame({"a": 1, "b": [1, pd.NA, 2]}, dtype=any_numeric_ea_dtype) + result = df.groupby("a").cumsum(skipna=skipna) + expected = DataFrame( + {"b": [1, pd.NA, val]}, + dtype=any_numeric_ea_dtype, + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "val_in, index, val_out", + [ + ( + [1.0, 2.0, 3.0, 4.0, 5.0], + ["foo", "foo", "bar", "baz", "blah"], + [3.0, 4.0, 5.0, 3.0], + ), + ( + [1.0, 2.0, 3.0, 4.0, 5.0, 6.0], + ["foo", "foo", "bar", "baz", "blah", "blah"], + [3.0, 4.0, 11.0, 3.0], + ), + ], +) +def test_groupby_index_name_in_index_content(val_in, index, val_out): + # GH 48567 + series = Series(data=val_in, name="values", index=Index(index, name="blah")) + result = series.groupby("blah").sum() + expected = Series( + data=val_out, + name="values", + index=Index(["bar", "baz", "blah", "foo"], name="blah"), + ) + tm.assert_series_equal(result, expected) + + result = series.to_frame().groupby("blah").sum() + expected = expected.to_frame() + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("n", [1, 10, 32, 100, 1000]) +def test_sum_of_booleans(n): + # GH 50347 + df = DataFrame({"groupby_col": 1, "bool": [True] * n}) + df["bool"] = df["bool"].eq(True) + result = df.groupby("groupby_col").sum() + expected = DataFrame({"bool": [n]}, index=Index([1], name="groupby_col")) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.filterwarnings( + "ignore:invalid value encountered in remainder:RuntimeWarning" +) +@pytest.mark.parametrize("method", ["head", "tail", "nth", "first", "last"]) +def test_groupby_method_drop_na(method): + # GH 21755 + df = DataFrame({"A": ["a", np.nan, "b", np.nan, "c"], "B": range(5)}) + + if method == "nth": + result = getattr(df.groupby("A"), method)(n=0) + else: + result = getattr(df.groupby("A"), method)() + + if method in ["first", "last"]: + expected = DataFrame({"B": [0, 2, 4]}).set_index( + Series(["a", "b", "c"], name="A") + ) + else: + expected = DataFrame({"A": ["a", "b", "c"], "B": [0, 2, 4]}, index=[0, 2, 4]) + tm.assert_frame_equal(result, expected) + + +def test_groupby_reduce_period(): + # GH#51040 + pi = pd.period_range("2016-01-01", periods=100, freq="D") + grps = list(range(10)) * 10 + ser = pi.to_series() + gb = ser.groupby(grps) + + with pytest.raises(TypeError, match="Period type does not support sum operations"): + gb.sum() + with pytest.raises( + TypeError, match="Period type does not support cumsum operations" + ): + gb.cumsum() + with pytest.raises(TypeError, match="Period type does not support prod operations"): + gb.prod() + with pytest.raises( + TypeError, match="Period type does not support cumprod operations" + ): + gb.cumprod() + + res = gb.max() + expected = ser[-10:] + expected.index = Index(range(10), dtype=int) + tm.assert_series_equal(res, expected) + + res = gb.min() + expected = ser[:10] + expected.index = Index(range(10), dtype=int) + tm.assert_series_equal(res, expected) + + +def test_obj_with_exclusions_duplicate_columns(): + # GH#50806 + df = DataFrame([[0, 1, 2, 3]]) + df.columns = [0, 1, 2, 0] + gb = df.groupby(df[1]) + result = gb._obj_with_exclusions + expected = df.take([0, 2, 3], axis=1) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("numeric_only", [True, False]) +def test_groupby_numeric_only_std_no_result(numeric_only): + # GH 51080 + dicts_non_numeric = [{"a": "foo", "b": "bar"}, {"a": "car", "b": "dar"}] + df = DataFrame(dicts_non_numeric, dtype=object) + dfgb = df.groupby("a", as_index=False, sort=False) + + if numeric_only: + result = dfgb.std(numeric_only=True) + expected_df = DataFrame(["foo", "car"], columns=["a"]) + tm.assert_frame_equal(result, expected_df) + else: + with pytest.raises( + ValueError, match="could not convert string to float: 'bar'" + ): + dfgb.std(numeric_only=numeric_only) + + +@pytest.mark.filterwarnings("ignore:invalid value encountered in cast:RuntimeWarning") +def test_grouping_with_categorical_interval_columns(): + # GH#34164 + df = DataFrame({"x": [0.1, 0.2, 0.3, -0.4, 0.5], "w": ["a", "b", "a", "c", "a"]}) + qq = pd.qcut(df["x"], q=np.linspace(0, 1, 5)) + result = df.groupby([qq, "w"], observed=False)["x"].agg("mean") + categorical_index_level_1 = Categorical( + [ + Interval(-0.401, 0.1, closed="right"), + Interval(0.1, 0.2, closed="right"), + Interval(0.2, 0.3, closed="right"), + Interval(0.3, 0.5, closed="right"), + ], + ordered=True, + ) + index_level_2 = ["a", "b", "c"] + mi = MultiIndex.from_product( + [categorical_index_level_1, index_level_2], names=["x", "w"] + ) + expected = Series( + np.array( + [ + 0.1, + np.nan, + -0.4, + np.nan, + 0.2, + np.nan, + 0.3, + np.nan, + np.nan, + 0.5, + np.nan, + np.nan, + ] + ), + index=mi, + name="x", + ) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("bug_var", [1, "a"]) +def test_groupby_sum_on_nan_should_return_nan(bug_var): + # GH 24196 + df = DataFrame({"A": [bug_var, bug_var, bug_var, np.nan]}) + if isinstance(bug_var, str): + df = df.astype(object) + dfgb = df.groupby(lambda x: x) + result = dfgb.sum(min_count=1) + + expected_df = DataFrame( + [bug_var, bug_var, bug_var, None], columns=["A"], dtype=df["A"].dtype + ) + tm.assert_frame_equal(result, expected_df) + + +@pytest.mark.parametrize( + "method", + [ + "count", + "corr", + "cummax", + "cummin", + "cumprod", + "describe", + "rank", + "quantile", + "diff", + "shift", + "all", + "any", + "idxmin", + "idxmax", + "ffill", + "bfill", + "pct_change", + ], +) +def test_groupby_selection_with_methods(df, method): + # some methods which require DatetimeIndex + rng = date_range("2014", periods=len(df)) + df.index = rng + + g = df.groupby(["A"])[["C"]] + g_exp = df[["C"]].groupby(df["A"]) + # TODO check groupby with > 1 col ? + + res = getattr(g, method)() + exp = getattr(g_exp, method)() + + # should always be frames! + tm.assert_frame_equal(res, exp) + + +def test_groupby_selection_other_methods(df): + # some methods which require DatetimeIndex + rng = date_range("2014", periods=len(df)) + df.columns.name = "foo" + df.index = rng + + g = df.groupby(["A"])[["C"]] + g_exp = df[["C"]].groupby(df["A"]) + + # methods which aren't just .foo() + warn_msg = "DataFrameGroupBy.fillna is deprecated" + with tm.assert_produces_warning(FutureWarning, match=warn_msg): + tm.assert_frame_equal(g.fillna(0), g_exp.fillna(0)) + msg = "DataFrameGroupBy.dtypes is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + tm.assert_frame_equal(g.dtypes, g_exp.dtypes) + tm.assert_frame_equal(g.apply(lambda x: x.sum()), g_exp.apply(lambda x: x.sum())) + + tm.assert_frame_equal(g.resample("D").mean(), g_exp.resample("D").mean()) + tm.assert_frame_equal(g.resample("D").ohlc(), g_exp.resample("D").ohlc()) + + tm.assert_frame_equal( + g.filter(lambda x: len(x) == 3), g_exp.filter(lambda x: len(x) == 3) + ) + + +def test_groupby_with_Time_Grouper(unit): + idx2 = to_datetime( + [ + "2016-08-31 22:08:12.000", + "2016-08-31 22:09:12.200", + "2016-08-31 22:20:12.400", + ] + ).as_unit(unit) + + test_data = DataFrame( + {"quant": [1.0, 1.0, 3.0], "quant2": [1.0, 1.0, 3.0], "time2": idx2} + ) + + time2 = date_range("2016-08-31 22:08:00", periods=13, freq="1min", unit=unit) + expected_output = DataFrame( + { + "time2": time2, + "quant": [1, 1, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 1], + "quant2": [1, 1, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 1], + } + ) + + gb = test_data.groupby(Grouper(key="time2", freq="1min")) + result = gb.count().reset_index() + + tm.assert_frame_equal(result, expected_output) + + +def test_groupby_series_with_datetimeindex_month_name(): + # GH 48509 + s = Series([0, 1, 0], index=date_range("2022-01-01", periods=3), name="jan") + result = s.groupby(s).count() + expected = Series([2, 1], name="jan") + expected.index.name = "jan" + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("test_series", [True, False]) +@pytest.mark.parametrize( + "kwarg, value, name, warn", + [ + ("by", "a", 1, None), + ("by", ["a"], 1, FutureWarning), + ("by", ["a"], (1,), None), + ("level", 0, 1, None), + ("level", [0], 1, FutureWarning), + ("level", [0], (1,), None), + ], +) +def test_depr_get_group_len_1_list_likes(test_series, kwarg, value, name, warn): + # GH#25971 + obj = DataFrame({"b": [3, 4, 5]}, index=Index([1, 1, 2], name="a")) + if test_series: + obj = obj["b"] + gb = obj.groupby(**{kwarg: value}) + msg = "you will need to pass a length-1 tuple" + with tm.assert_produces_warning(warn, match=msg): + result = gb.get_group(name) + if test_series: + expected = Series([3, 4], index=Index([1, 1], name="a"), name="b") + else: + expected = DataFrame({"b": [3, 4]}, index=Index([1, 1], name="a")) + tm.assert_equal(result, expected) + + +def test_groupby_ngroup_with_nan(): + # GH#50100 + df = DataFrame({"a": Categorical([np.nan]), "b": [1]}) + result = df.groupby(["a", "b"], dropna=False, observed=False).ngroup() + expected = Series([0]) + tm.assert_series_equal(result, expected) + + +def test_get_group_axis_1(): + # GH#54858 + df = DataFrame( + { + "col1": [0, 3, 2, 3], + "col2": [4, 1, 6, 7], + "col3": [3, 8, 2, 10], + "col4": [1, 13, 6, 15], + "col5": [-4, 5, 6, -7], + } + ) + with tm.assert_produces_warning(FutureWarning, match="deprecated"): + grouped = df.groupby(axis=1, by=[1, 2, 3, 2, 1]) + result = grouped.get_group(1) + expected = DataFrame( + { + "col1": [0, 3, 2, 3], + "col5": [-4, 5, 6, -7], + } + ) + tm.assert_frame_equal(result, expected) + + +def test_groupby_ffill_with_duplicated_index(): + # GH#43412 + df = DataFrame({"a": [1, 2, 3, 4, np.nan, np.nan]}, index=[0, 1, 2, 0, 1, 2]) + + result = df.groupby(level=0).ffill() + expected = DataFrame({"a": [1, 2, 3, 4, 2, 3]}, index=[0, 1, 2, 0, 1, 2]) + tm.assert_frame_equal(result, expected, check_dtype=False) + + +@pytest.mark.parametrize("test_series", [True, False]) +def test_decimal_na_sort(test_series): + # GH#54847 + # We catch both TypeError and decimal.InvalidOperation exceptions in safe_sort. + # If this next assert raises, we can just catch TypeError + assert not isinstance(decimal.InvalidOperation, TypeError) + df = DataFrame( + { + "key": [Decimal(1), Decimal(1), None, None], + "value": [Decimal(2), Decimal(3), Decimal(4), Decimal(5)], + } + ) + gb = df.groupby("key", dropna=False) + if test_series: + gb = gb["value"] + result = gb._grouper.result_index + expected = Index([Decimal(1), None], name="key") + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_groupby_dropna.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_groupby_dropna.py new file mode 100644 index 0000000000000000000000000000000000000000..2a9b61aa7ebf5cb27890536a5105a79fb6cae096 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_groupby_dropna.py @@ -0,0 +1,696 @@ +import numpy as np +import pytest + +from pandas.compat.pyarrow import pa_version_under10p1 + +from pandas.core.dtypes.missing import na_value_for_dtype + +import pandas as pd +import pandas._testing as tm +from pandas.tests.groupby import get_groupby_method_args + + +@pytest.mark.parametrize( + "dropna, tuples, outputs", + [ + ( + True, + [["A", "B"], ["B", "A"]], + {"c": [13.0, 123.23], "d": [13.0, 123.0], "e": [13.0, 1.0]}, + ), + ( + False, + [["A", "B"], ["A", np.nan], ["B", "A"]], + { + "c": [13.0, 12.3, 123.23], + "d": [13.0, 233.0, 123.0], + "e": [13.0, 12.0, 1.0], + }, + ), + ], +) +def test_groupby_dropna_multi_index_dataframe_nan_in_one_group( + dropna, tuples, outputs, nulls_fixture +): + # GH 3729 this is to test that NA is in one group + df_list = [ + ["A", "B", 12, 12, 12], + ["A", nulls_fixture, 12.3, 233.0, 12], + ["B", "A", 123.23, 123, 1], + ["A", "B", 1, 1, 1.0], + ] + df = pd.DataFrame(df_list, columns=["a", "b", "c", "d", "e"]) + grouped = df.groupby(["a", "b"], dropna=dropna).sum() + + mi = pd.MultiIndex.from_tuples(tuples, names=list("ab")) + + # Since right now, by default MI will drop NA from levels when we create MI + # via `from_*`, so we need to add NA for level manually afterwards. + if not dropna: + mi = mi.set_levels(["A", "B", np.nan], level="b") + expected = pd.DataFrame(outputs, index=mi) + + tm.assert_frame_equal(grouped, expected) + + +@pytest.mark.parametrize( + "dropna, tuples, outputs", + [ + ( + True, + [["A", "B"], ["B", "A"]], + {"c": [12.0, 123.23], "d": [12.0, 123.0], "e": [12.0, 1.0]}, + ), + ( + False, + [["A", "B"], ["A", np.nan], ["B", "A"], [np.nan, "B"]], + { + "c": [12.0, 13.3, 123.23, 1.0], + "d": [12.0, 234.0, 123.0, 1.0], + "e": [12.0, 13.0, 1.0, 1.0], + }, + ), + ], +) +def test_groupby_dropna_multi_index_dataframe_nan_in_two_groups( + dropna, tuples, outputs, nulls_fixture, nulls_fixture2 +): + # GH 3729 this is to test that NA in different groups with different representations + df_list = [ + ["A", "B", 12, 12, 12], + ["A", nulls_fixture, 12.3, 233.0, 12], + ["B", "A", 123.23, 123, 1], + [nulls_fixture2, "B", 1, 1, 1.0], + ["A", nulls_fixture2, 1, 1, 1.0], + ] + df = pd.DataFrame(df_list, columns=["a", "b", "c", "d", "e"]) + grouped = df.groupby(["a", "b"], dropna=dropna).sum() + + mi = pd.MultiIndex.from_tuples(tuples, names=list("ab")) + + # Since right now, by default MI will drop NA from levels when we create MI + # via `from_*`, so we need to add NA for level manually afterwards. + if not dropna: + mi = mi.set_levels([["A", "B", np.nan], ["A", "B", np.nan]]) + expected = pd.DataFrame(outputs, index=mi) + + tm.assert_frame_equal(grouped, expected) + + +@pytest.mark.parametrize( + "dropna, idx, outputs", + [ + (True, ["A", "B"], {"b": [123.23, 13.0], "c": [123.0, 13.0], "d": [1.0, 13.0]}), + ( + False, + ["A", "B", np.nan], + { + "b": [123.23, 13.0, 12.3], + "c": [123.0, 13.0, 233.0], + "d": [1.0, 13.0, 12.0], + }, + ), + ], +) +def test_groupby_dropna_normal_index_dataframe(dropna, idx, outputs): + # GH 3729 + df_list = [ + ["B", 12, 12, 12], + [None, 12.3, 233.0, 12], + ["A", 123.23, 123, 1], + ["B", 1, 1, 1.0], + ] + df = pd.DataFrame(df_list, columns=["a", "b", "c", "d"]) + grouped = df.groupby("a", dropna=dropna).sum() + + expected = pd.DataFrame(outputs, index=pd.Index(idx, name="a")) + + tm.assert_frame_equal(grouped, expected) + + +@pytest.mark.parametrize( + "dropna, idx, expected", + [ + (True, ["a", "a", "b", np.nan], pd.Series([3, 3], index=["a", "b"])), + ( + False, + ["a", "a", "b", np.nan], + pd.Series([3, 3, 3], index=["a", "b", np.nan]), + ), + ], +) +def test_groupby_dropna_series_level(dropna, idx, expected): + ser = pd.Series([1, 2, 3, 3], index=idx) + + result = ser.groupby(level=0, dropna=dropna).sum() + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "dropna, expected", + [ + (True, pd.Series([210.0, 350.0], index=["a", "b"], name="Max Speed")), + ( + False, + pd.Series([210.0, 350.0, 20.0], index=["a", "b", np.nan], name="Max Speed"), + ), + ], +) +def test_groupby_dropna_series_by(dropna, expected): + ser = pd.Series( + [390.0, 350.0, 30.0, 20.0], + index=["Falcon", "Falcon", "Parrot", "Parrot"], + name="Max Speed", + ) + + result = ser.groupby(["a", "b", "a", np.nan], dropna=dropna).mean() + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("dropna", (False, True)) +def test_grouper_dropna_propagation(dropna): + # GH 36604 + df = pd.DataFrame({"A": [0, 0, 1, None], "B": [1, 2, 3, None]}) + gb = df.groupby("A", dropna=dropna) + assert gb._grouper.dropna == dropna + + +@pytest.mark.parametrize( + "index", + [ + pd.RangeIndex(0, 4), + list("abcd"), + pd.MultiIndex.from_product([(1, 2), ("R", "B")], names=["num", "col"]), + ], +) +def test_groupby_dataframe_slice_then_transform(dropna, index): + # GH35014 & GH35612 + expected_data = {"B": [2, 2, 1, np.nan if dropna else 1]} + + df = pd.DataFrame({"A": [0, 0, 1, None], "B": [1, 2, 3, None]}, index=index) + gb = df.groupby("A", dropna=dropna) + + result = gb.transform(len) + expected = pd.DataFrame(expected_data, index=index) + tm.assert_frame_equal(result, expected) + + result = gb[["B"]].transform(len) + expected = pd.DataFrame(expected_data, index=index) + tm.assert_frame_equal(result, expected) + + result = gb["B"].transform(len) + expected = pd.Series(expected_data["B"], index=index, name="B") + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "dropna, tuples, outputs", + [ + ( + True, + [["A", "B"], ["B", "A"]], + {"c": [13.0, 123.23], "d": [12.0, 123.0], "e": [1.0, 1.0]}, + ), + ( + False, + [["A", "B"], ["A", np.nan], ["B", "A"]], + { + "c": [13.0, 12.3, 123.23], + "d": [12.0, 233.0, 123.0], + "e": [1.0, 12.0, 1.0], + }, + ), + ], +) +def test_groupby_dropna_multi_index_dataframe_agg(dropna, tuples, outputs): + # GH 3729 + df_list = [ + ["A", "B", 12, 12, 12], + ["A", None, 12.3, 233.0, 12], + ["B", "A", 123.23, 123, 1], + ["A", "B", 1, 1, 1.0], + ] + df = pd.DataFrame(df_list, columns=["a", "b", "c", "d", "e"]) + agg_dict = {"c": "sum", "d": "max", "e": "min"} + grouped = df.groupby(["a", "b"], dropna=dropna).agg(agg_dict) + + mi = pd.MultiIndex.from_tuples(tuples, names=list("ab")) + + # Since right now, by default MI will drop NA from levels when we create MI + # via `from_*`, so we need to add NA for level manually afterwards. + if not dropna: + mi = mi.set_levels(["A", "B", np.nan], level="b") + expected = pd.DataFrame(outputs, index=mi) + + tm.assert_frame_equal(grouped, expected) + + +@pytest.mark.arm_slow +@pytest.mark.parametrize( + "datetime1, datetime2", + [ + (pd.Timestamp("2020-01-01"), pd.Timestamp("2020-02-01")), + (pd.Timedelta("-2 days"), pd.Timedelta("-1 days")), + (pd.Period("2020-01-01"), pd.Period("2020-02-01")), + ], +) +@pytest.mark.parametrize("dropna, values", [(True, [12, 3]), (False, [12, 3, 6])]) +def test_groupby_dropna_datetime_like_data( + dropna, values, datetime1, datetime2, unique_nulls_fixture, unique_nulls_fixture2 +): + # 3729 + df = pd.DataFrame( + { + "values": [1, 2, 3, 4, 5, 6], + "dt": [ + datetime1, + unique_nulls_fixture, + datetime2, + unique_nulls_fixture2, + datetime1, + datetime1, + ], + } + ) + + if dropna: + indexes = [datetime1, datetime2] + else: + indexes = [datetime1, datetime2, np.nan] + + grouped = df.groupby("dt", dropna=dropna).agg({"values": "sum"}) + expected = pd.DataFrame({"values": values}, index=pd.Index(indexes, name="dt")) + + tm.assert_frame_equal(grouped, expected) + + +@pytest.mark.parametrize( + "dropna, data, selected_data, levels", + [ + pytest.param( + False, + {"groups": ["a", "a", "b", np.nan], "values": [10, 10, 20, 30]}, + {"values": [0, 1, 0, 0]}, + ["a", "b", np.nan], + id="dropna_false_has_nan", + ), + pytest.param( + True, + {"groups": ["a", "a", "b", np.nan], "values": [10, 10, 20, 30]}, + {"values": [0, 1, 0]}, + None, + id="dropna_true_has_nan", + ), + pytest.param( + # no nan in "groups"; dropna=True|False should be same. + False, + {"groups": ["a", "a", "b", "c"], "values": [10, 10, 20, 30]}, + {"values": [0, 1, 0, 0]}, + None, + id="dropna_false_no_nan", + ), + pytest.param( + # no nan in "groups"; dropna=True|False should be same. + True, + {"groups": ["a", "a", "b", "c"], "values": [10, 10, 20, 30]}, + {"values": [0, 1, 0, 0]}, + None, + id="dropna_true_no_nan", + ), + ], +) +def test_groupby_apply_with_dropna_for_multi_index(dropna, data, selected_data, levels): + # GH 35889 + + df = pd.DataFrame(data) + gb = df.groupby("groups", dropna=dropna) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = gb.apply(lambda grp: pd.DataFrame({"values": range(len(grp))})) + + mi_tuples = tuple(zip(data["groups"], selected_data["values"])) + mi = pd.MultiIndex.from_tuples(mi_tuples, names=["groups", None]) + # Since right now, by default MI will drop NA from levels when we create MI + # via `from_*`, so we need to add NA for level manually afterwards. + if not dropna and levels: + mi = mi.set_levels(levels, level="groups") + + expected = pd.DataFrame(selected_data, index=mi) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("input_index", [None, ["a"], ["a", "b"]]) +@pytest.mark.parametrize("keys", [["a"], ["a", "b"]]) +@pytest.mark.parametrize("series", [True, False]) +def test_groupby_dropna_with_multiindex_input(input_index, keys, series): + # GH#46783 + obj = pd.DataFrame( + { + "a": [1, np.nan], + "b": [1, 1], + "c": [2, 3], + } + ) + + expected = obj.set_index(keys) + if series: + expected = expected["c"] + elif input_index == ["a", "b"] and keys == ["a"]: + # Column b should not be aggregated + expected = expected[["c"]] + + if input_index is not None: + obj = obj.set_index(input_index) + gb = obj.groupby(keys, dropna=False) + if series: + gb = gb["c"] + result = gb.sum() + + tm.assert_equal(result, expected) + + +def test_groupby_nan_included(): + # GH 35646 + data = {"group": ["g1", np.nan, "g1", "g2", np.nan], "B": [0, 1, 2, 3, 4]} + df = pd.DataFrame(data) + grouped = df.groupby("group", dropna=False) + result = grouped.indices + dtype = np.intp + expected = { + "g1": np.array([0, 2], dtype=dtype), + "g2": np.array([3], dtype=dtype), + np.nan: np.array([1, 4], dtype=dtype), + } + for result_values, expected_values in zip(result.values(), expected.values()): + tm.assert_numpy_array_equal(result_values, expected_values) + assert np.isnan(list(result.keys())[2]) + assert list(result.keys())[0:2] == ["g1", "g2"] + + +def test_groupby_drop_nan_with_multi_index(): + # GH 39895 + df = pd.DataFrame([[np.nan, 0, 1]], columns=["a", "b", "c"]) + df = df.set_index(["a", "b"]) + result = df.groupby(["a", "b"], dropna=False).first() + expected = df + tm.assert_frame_equal(result, expected) + + +# sequence_index enumerates all strings made up of x, y, z of length 4 +@pytest.mark.parametrize("sequence_index", range(3**4)) +@pytest.mark.parametrize( + "dtype", + [ + None, + "UInt8", + "Int8", + "UInt16", + "Int16", + "UInt32", + "Int32", + "UInt64", + "Int64", + "Float32", + "Int64", + "Float64", + "category", + "string", + pytest.param( + "string[pyarrow]", + marks=pytest.mark.skipif( + pa_version_under10p1, reason="pyarrow is not installed" + ), + ), + "datetime64[ns]", + "period[d]", + "Sparse[float]", + ], +) +@pytest.mark.parametrize("test_series", [True, False]) +def test_no_sort_keep_na(sequence_index, dtype, test_series, as_index): + # GH#46584, GH#48794 + + # Convert sequence_index into a string sequence, e.g. 5 becomes "xxyz" + # This sequence is used for the grouper. + sequence = "".join( + [{0: "x", 1: "y", 2: "z"}[sequence_index // (3**k) % 3] for k in range(4)] + ) + + # Unique values to use for grouper, depends on dtype + if dtype in ("string", "string[pyarrow]"): + uniques = {"x": "x", "y": "y", "z": pd.NA} + elif dtype in ("datetime64[ns]", "period[d]"): + uniques = {"x": "2016-01-01", "y": "2017-01-01", "z": pd.NA} + else: + uniques = {"x": 1, "y": 2, "z": np.nan} + + df = pd.DataFrame( + { + "key": pd.Series([uniques[label] for label in sequence], dtype=dtype), + "a": [0, 1, 2, 3], + } + ) + gb = df.groupby("key", dropna=False, sort=False, as_index=as_index, observed=False) + if test_series: + gb = gb["a"] + result = gb.sum() + + # Manually compute the groupby sum, use the labels "x", "y", and "z" to avoid + # issues with hashing np.nan + summed = {} + for idx, label in enumerate(sequence): + summed[label] = summed.get(label, 0) + idx + if dtype == "category": + index = pd.CategoricalIndex( + [uniques[e] for e in summed], + df["key"].cat.categories, + name="key", + ) + elif isinstance(dtype, str) and dtype.startswith("Sparse"): + index = pd.Index( + pd.array([uniques[label] for label in summed], dtype=dtype), name="key" + ) + else: + index = pd.Index([uniques[label] for label in summed], dtype=dtype, name="key") + expected = pd.Series(summed.values(), index=index, name="a", dtype=None) + if not test_series: + expected = expected.to_frame() + if not as_index: + expected = expected.reset_index() + if dtype is not None and dtype.startswith("Sparse"): + expected["key"] = expected["key"].astype(dtype) + + tm.assert_equal(result, expected) + + +@pytest.mark.parametrize("test_series", [True, False]) +@pytest.mark.parametrize("dtype", [object, None]) +def test_null_is_null_for_dtype( + sort, dtype, nulls_fixture, nulls_fixture2, test_series +): + # GH#48506 - groups should always result in using the null for the dtype + df = pd.DataFrame({"a": [1, 2]}) + groups = pd.Series([nulls_fixture, nulls_fixture2], dtype=dtype) + obj = df["a"] if test_series else df + gb = obj.groupby(groups, dropna=False, sort=sort) + result = gb.sum() + index = pd.Index([na_value_for_dtype(groups.dtype)]) + expected = pd.DataFrame({"a": [3]}, index=index) + if test_series: + tm.assert_series_equal(result, expected["a"]) + else: + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("index_kind", ["range", "single", "multi"]) +def test_categorical_reducers(reduction_func, observed, sort, as_index, index_kind): + # Ensure there is at least one null value by appending to the end + values = np.append(np.random.default_rng(2).choice([1, 2, None], size=19), None) + df = pd.DataFrame( + {"x": pd.Categorical(values, categories=[1, 2, 3]), "y": range(20)} + ) + + # Strategy: Compare to dropna=True by filling null values with a new code + df_filled = df.copy() + df_filled["x"] = pd.Categorical(values, categories=[1, 2, 3, 4]).fillna(4) + + if index_kind == "range": + keys = ["x"] + elif index_kind == "single": + keys = ["x"] + df = df.set_index("x") + df_filled = df_filled.set_index("x") + else: + keys = ["x", "x2"] + df["x2"] = df["x"] + df = df.set_index(["x", "x2"]) + df_filled["x2"] = df_filled["x"] + df_filled = df_filled.set_index(["x", "x2"]) + args = get_groupby_method_args(reduction_func, df) + args_filled = get_groupby_method_args(reduction_func, df_filled) + if reduction_func == "corrwith" and index_kind == "range": + # Don't include the grouping columns so we can call reset_index + args = (args[0].drop(columns=keys),) + args_filled = (args_filled[0].drop(columns=keys),) + + gb_keepna = df.groupby( + keys, dropna=False, observed=observed, sort=sort, as_index=as_index + ) + + if not observed and reduction_func in ["idxmin", "idxmax"]: + with pytest.raises( + ValueError, match="empty group due to unobserved categories" + ): + getattr(gb_keepna, reduction_func)(*args) + return + + gb_filled = df_filled.groupby(keys, observed=observed, sort=sort, as_index=True) + expected = getattr(gb_filled, reduction_func)(*args_filled).reset_index() + expected["x"] = expected["x"].cat.remove_categories([4]) + if index_kind == "multi": + expected["x2"] = expected["x2"].cat.remove_categories([4]) + if as_index: + if index_kind == "multi": + expected = expected.set_index(["x", "x2"]) + else: + expected = expected.set_index("x") + elif index_kind != "range" and reduction_func != "size": + # size, unlike other methods, has the desired behavior in GH#49519 + expected = expected.drop(columns="x") + if index_kind == "multi": + expected = expected.drop(columns="x2") + if reduction_func in ("idxmax", "idxmin") and index_kind != "range": + # expected was computed with a RangeIndex; need to translate to index values + values = expected["y"].values.tolist() + if index_kind == "single": + values = [np.nan if e == 4 else e for e in values] + expected["y"] = pd.Categorical(values, categories=[1, 2, 3]) + else: + values = [(np.nan, np.nan) if e == (4, 4) else e for e in values] + expected["y"] = values + if reduction_func == "size": + # size, unlike other methods, has the desired behavior in GH#49519 + expected = expected.rename(columns={0: "size"}) + if as_index: + expected = expected["size"].rename(None) + + if as_index or index_kind == "range" or reduction_func == "size": + warn = None + else: + warn = FutureWarning + msg = "A grouping .* was excluded from the result" + with tm.assert_produces_warning(warn, match=msg): + result = getattr(gb_keepna, reduction_func)(*args) + + # size will return a Series, others are DataFrame + tm.assert_equal(result, expected) + + +def test_categorical_transformers( + request, transformation_func, observed, sort, as_index +): + # GH#36327 + if transformation_func == "fillna": + msg = "GH#49651 fillna may incorrectly reorders results when dropna=False" + request.applymarker(pytest.mark.xfail(reason=msg, strict=False)) + + values = np.append(np.random.default_rng(2).choice([1, 2, None], size=19), None) + df = pd.DataFrame( + {"x": pd.Categorical(values, categories=[1, 2, 3]), "y": range(20)} + ) + args = get_groupby_method_args(transformation_func, df) + + # Compute result for null group + null_group_values = df[df["x"].isnull()]["y"] + if transformation_func == "cumcount": + null_group_data = list(range(len(null_group_values))) + elif transformation_func == "ngroup": + if sort: + if observed: + na_group = df["x"].nunique(dropna=False) - 1 + else: + # TODO: Should this be 3? + na_group = df["x"].nunique(dropna=False) - 1 + else: + na_group = df.iloc[: null_group_values.index[0]]["x"].nunique() + null_group_data = len(null_group_values) * [na_group] + else: + null_group_data = getattr(null_group_values, transformation_func)(*args) + null_group_result = pd.DataFrame({"y": null_group_data}) + + gb_keepna = df.groupby( + "x", dropna=False, observed=observed, sort=sort, as_index=as_index + ) + gb_dropna = df.groupby("x", dropna=True, observed=observed, sort=sort) + + msg = "The default fill_method='ffill' in DataFrameGroupBy.pct_change is deprecated" + if transformation_func == "pct_change": + with tm.assert_produces_warning(FutureWarning, match=msg): + result = getattr(gb_keepna, "pct_change")(*args) + else: + result = getattr(gb_keepna, transformation_func)(*args) + expected = getattr(gb_dropna, transformation_func)(*args) + + for iloc, value in zip( + df[df["x"].isnull()].index.tolist(), null_group_result.values.ravel() + ): + if expected.ndim == 1: + expected.iloc[iloc] = value + else: + expected.iloc[iloc, 0] = value + if transformation_func == "ngroup": + expected[df["x"].notnull() & expected.ge(na_group)] += 1 + if transformation_func not in ("rank", "diff", "pct_change", "shift"): + expected = expected.astype("int64") + + tm.assert_equal(result, expected) + + +@pytest.mark.parametrize("method", ["head", "tail"]) +def test_categorical_head_tail(method, observed, sort, as_index): + # GH#36327 + values = np.random.default_rng(2).choice([1, 2, None], 30) + df = pd.DataFrame( + {"x": pd.Categorical(values, categories=[1, 2, 3]), "y": range(len(values))} + ) + gb = df.groupby("x", dropna=False, observed=observed, sort=sort, as_index=as_index) + result = getattr(gb, method)() + + if method == "tail": + values = values[::-1] + # Take the top 5 values from each group + mask = ( + ((values == 1) & ((values == 1).cumsum() <= 5)) + | ((values == 2) & ((values == 2).cumsum() <= 5)) + # flake8 doesn't like the vectorized check for None, thinks we should use `is` + | ((values == None) & ((values == None).cumsum() <= 5)) # noqa: E711 + ) + if method == "tail": + mask = mask[::-1] + expected = df[mask] + + tm.assert_frame_equal(result, expected) + + +def test_categorical_agg(): + # GH#36327 + values = np.random.default_rng(2).choice([1, 2, None], 30) + df = pd.DataFrame( + {"x": pd.Categorical(values, categories=[1, 2, 3]), "y": range(len(values))} + ) + gb = df.groupby("x", dropna=False, observed=False) + result = gb.agg(lambda x: x.sum()) + expected = gb.sum() + tm.assert_frame_equal(result, expected) + + +def test_categorical_transform(): + # GH#36327 + values = np.random.default_rng(2).choice([1, 2, None], 30) + df = pd.DataFrame( + {"x": pd.Categorical(values, categories=[1, 2, 3]), "y": range(len(values))} + ) + gb = df.groupby("x", dropna=False, observed=False) + result = gb.transform(lambda x: x.sum()) + expected = gb.transform("sum") + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_groupby_subclass.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_groupby_subclass.py new file mode 100644 index 0000000000000000000000000000000000000000..b5523592c3c5c33772083de8970b1223ff482ea6 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_groupby_subclass.py @@ -0,0 +1,135 @@ +from datetime import datetime + +import numpy as np +import pytest + +from pandas import ( + DataFrame, + Index, + Series, +) +import pandas._testing as tm +from pandas.tests.groupby import get_groupby_method_args + +pytestmark = pytest.mark.filterwarnings( + "ignore:Passing a BlockManager|Passing a SingleBlockManager:DeprecationWarning" +) + + +@pytest.mark.parametrize( + "obj", + [ + tm.SubclassedDataFrame({"A": np.arange(0, 10)}), + tm.SubclassedSeries(np.arange(0, 10), name="A"), + ], +) +def test_groupby_preserves_subclass(obj, groupby_func): + # GH28330 -- preserve subclass through groupby operations + + if isinstance(obj, Series) and groupby_func in {"corrwith"}: + pytest.skip(f"Not applicable for Series and {groupby_func}") + + grouped = obj.groupby(np.arange(0, 10)) + + # Groups should preserve subclass type + assert isinstance(grouped.get_group(0), type(obj)) + + args = get_groupby_method_args(groupby_func, obj) + + warn = FutureWarning if groupby_func == "fillna" else None + msg = f"{type(grouped).__name__}.fillna is deprecated" + with tm.assert_produces_warning(warn, match=msg, raise_on_extra_warnings=False): + result1 = getattr(grouped, groupby_func)(*args) + with tm.assert_produces_warning(warn, match=msg, raise_on_extra_warnings=False): + result2 = grouped.agg(groupby_func, *args) + + # Reduction or transformation kernels should preserve type + slices = {"ngroup", "cumcount", "size"} + if isinstance(obj, DataFrame) and groupby_func in slices: + assert isinstance(result1, tm.SubclassedSeries) + else: + assert isinstance(result1, type(obj)) + + # Confirm .agg() groupby operations return same results + if isinstance(result1, DataFrame): + tm.assert_frame_equal(result1, result2) + else: + tm.assert_series_equal(result1, result2) + + +def test_groupby_preserves_metadata(): + # GH-37343 + custom_df = tm.SubclassedDataFrame({"a": [1, 2, 3], "b": [1, 1, 2], "c": [7, 8, 9]}) + assert "testattr" in custom_df._metadata + custom_df.testattr = "hello" + for _, group_df in custom_df.groupby("c"): + assert group_df.testattr == "hello" + + # GH-45314 + def func(group): + assert isinstance(group, tm.SubclassedDataFrame) + assert hasattr(group, "testattr") + assert group.testattr == "hello" + return group.testattr + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning( + FutureWarning, + match=msg, + raise_on_extra_warnings=False, + check_stacklevel=False, + ): + result = custom_df.groupby("c").apply(func) + expected = tm.SubclassedSeries(["hello"] * 3, index=Index([7, 8, 9], name="c")) + tm.assert_series_equal(result, expected) + + result = custom_df.groupby("c").apply(func, include_groups=False) + tm.assert_series_equal(result, expected) + + # https://github.com/pandas-dev/pandas/pull/56761 + result = custom_df.groupby("c")[["a", "b"]].apply(func) + tm.assert_series_equal(result, expected) + + def func2(group): + assert isinstance(group, tm.SubclassedSeries) + assert hasattr(group, "testattr") + return group.testattr + + custom_series = tm.SubclassedSeries([1, 2, 3]) + custom_series.testattr = "hello" + result = custom_series.groupby(custom_df["c"]).apply(func2) + tm.assert_series_equal(result, expected) + result = custom_series.groupby(custom_df["c"]).agg(func2) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("obj", [DataFrame, tm.SubclassedDataFrame]) +def test_groupby_resample_preserves_subclass(obj): + # GH28330 -- preserve subclass through groupby.resample() + + df = obj( + { + "Buyer": Series("Carl Carl Carl Carl Joe Carl".split(), dtype=object), + "Quantity": [18, 3, 5, 1, 9, 3], + "Date": [ + datetime(2013, 9, 1, 13, 0), + datetime(2013, 9, 1, 13, 5), + datetime(2013, 10, 1, 20, 0), + datetime(2013, 10, 3, 10, 0), + datetime(2013, 12, 2, 12, 0), + datetime(2013, 9, 2, 14, 0), + ], + } + ) + df = df.set_index("Date") + + # Confirm groupby.resample() preserves dataframe type + msg = "DataFrameGroupBy.resample operated on the grouping columns" + with tm.assert_produces_warning( + FutureWarning, + match=msg, + raise_on_extra_warnings=False, + check_stacklevel=False, + ): + result = df.groupby("Buyer").resample("5D").sum() + assert isinstance(result, obj) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_grouping.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_grouping.py new file mode 100644 index 0000000000000000000000000000000000000000..9a0e67dea532bedac3a920f3c9bfa88e9d657f88 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_grouping.py @@ -0,0 +1,1238 @@ +""" +test where we are determining what we are grouping, or getting groups +""" +from datetime import ( + date, + timedelta, +) + +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + CategoricalIndex, + DataFrame, + Grouper, + Index, + MultiIndex, + Series, + Timestamp, + date_range, + period_range, +) +import pandas._testing as tm +from pandas.core.groupby.grouper import Grouping + +# selection +# -------------------------------- + + +class TestSelection: + def test_select_bad_cols(self): + df = DataFrame([[1, 2]], columns=["A", "B"]) + g = df.groupby("A") + with pytest.raises(KeyError, match="\"Columns not found: 'C'\""): + g[["C"]] + + with pytest.raises(KeyError, match="^[^A]+$"): + # A should not be referenced as a bad column... + # will have to rethink regex if you change message! + g[["A", "C"]] + + def test_groupby_duplicated_column_errormsg(self): + # GH7511 + df = DataFrame( + columns=["A", "B", "A", "C"], data=[range(4), range(2, 6), range(0, 8, 2)] + ) + + msg = "Grouper for 'A' not 1-dimensional" + with pytest.raises(ValueError, match=msg): + df.groupby("A") + with pytest.raises(ValueError, match=msg): + df.groupby(["A", "B"]) + + grouped = df.groupby("B") + c = grouped.count() + assert c.columns.nlevels == 1 + assert c.columns.size == 3 + + def test_column_select_via_attr(self, df): + result = df.groupby("A").C.sum() + expected = df.groupby("A")["C"].sum() + tm.assert_series_equal(result, expected) + + df["mean"] = 1.5 + result = df.groupby("A").mean(numeric_only=True) + expected = df.groupby("A")[["C", "D", "mean"]].agg("mean") + tm.assert_frame_equal(result, expected) + + def test_getitem_list_of_columns(self): + df = DataFrame( + { + "A": ["foo", "bar", "foo", "bar", "foo", "bar", "foo", "foo"], + "B": ["one", "one", "two", "three", "two", "two", "one", "three"], + "C": np.random.default_rng(2).standard_normal(8), + "D": np.random.default_rng(2).standard_normal(8), + "E": np.random.default_rng(2).standard_normal(8), + } + ) + + result = df.groupby("A")[["C", "D"]].mean() + result2 = df.groupby("A")[df.columns[2:4]].mean() + + expected = df.loc[:, ["A", "C", "D"]].groupby("A").mean() + + tm.assert_frame_equal(result, expected) + tm.assert_frame_equal(result2, expected) + + def test_getitem_numeric_column_names(self): + # GH #13731 + df = DataFrame( + { + 0: list("abcd") * 2, + 2: np.random.default_rng(2).standard_normal(8), + 4: np.random.default_rng(2).standard_normal(8), + 6: np.random.default_rng(2).standard_normal(8), + } + ) + result = df.groupby(0)[df.columns[1:3]].mean() + result2 = df.groupby(0)[[2, 4]].mean() + + expected = df.loc[:, [0, 2, 4]].groupby(0).mean() + + tm.assert_frame_equal(result, expected) + tm.assert_frame_equal(result2, expected) + + # per GH 23566 enforced deprecation raises a ValueError + with pytest.raises(ValueError, match="Cannot subset columns with a tuple"): + df.groupby(0)[2, 4].mean() + + def test_getitem_single_tuple_of_columns_raises(self, df): + # per GH 23566 enforced deprecation raises a ValueError + with pytest.raises(ValueError, match="Cannot subset columns with a tuple"): + df.groupby("A")["C", "D"].mean() + + def test_getitem_single_column(self): + df = DataFrame( + { + "A": ["foo", "bar", "foo", "bar", "foo", "bar", "foo", "foo"], + "B": ["one", "one", "two", "three", "two", "two", "one", "three"], + "C": np.random.default_rng(2).standard_normal(8), + "D": np.random.default_rng(2).standard_normal(8), + "E": np.random.default_rng(2).standard_normal(8), + } + ) + + result = df.groupby("A")["C"].mean() + + as_frame = df.loc[:, ["A", "C"]].groupby("A").mean() + as_series = as_frame.iloc[:, 0] + expected = as_series + + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize( + "func", [lambda x: x.sum(), lambda x: x.agg(lambda y: y.sum())] + ) + def test_getitem_from_grouper(self, func): + # GH 50383 + df = DataFrame({"a": [1, 1, 2], "b": 3, "c": 4, "d": 5}) + gb = df.groupby(["a", "b"])[["a", "c"]] + + idx = MultiIndex.from_tuples([(1, 3), (2, 3)], names=["a", "b"]) + expected = DataFrame({"a": [2, 2], "c": [8, 4]}, index=idx) + result = func(gb) + + tm.assert_frame_equal(result, expected) + + def test_indices_grouped_by_tuple_with_lambda(self): + # GH 36158 + df = DataFrame( + { + "Tuples": ( + (x, y) + for x in [0, 1] + for y in np.random.default_rng(2).integers(3, 5, 5) + ) + } + ) + + gb = df.groupby("Tuples") + gb_lambda = df.groupby(lambda x: df.iloc[x, 0]) + + expected = gb.indices + result = gb_lambda.indices + + tm.assert_dict_equal(result, expected) + + +# grouping +# -------------------------------- + + +class TestGrouping: + @pytest.mark.parametrize( + "index", + [ + Index(list("abcde")), + Index(np.arange(5)), + Index(np.arange(5, dtype=float)), + date_range("2020-01-01", periods=5), + period_range("2020-01-01", periods=5), + ], + ) + def test_grouper_index_types(self, index): + # related GH5375 + # groupby misbehaving when using a Floatlike index + df = DataFrame(np.arange(10).reshape(5, 2), columns=list("AB"), index=index) + + df.groupby(list("abcde"), group_keys=False).apply(lambda x: x) + + df.index = df.index[::-1] + df.groupby(list("abcde"), group_keys=False).apply(lambda x: x) + + def test_grouper_multilevel_freq(self): + # GH 7885 + # with level and freq specified in a Grouper + d0 = date.today() - timedelta(days=14) + dates = date_range(d0, date.today()) + date_index = MultiIndex.from_product([dates, dates], names=["foo", "bar"]) + df = DataFrame(np.random.default_rng(2).integers(0, 100, 225), index=date_index) + + # Check string level + expected = ( + df.reset_index() + .groupby([Grouper(key="foo", freq="W"), Grouper(key="bar", freq="W")]) + .sum() + ) + # reset index changes columns dtype to object + expected.columns = Index([0], dtype="int64") + + result = df.groupby( + [Grouper(level="foo", freq="W"), Grouper(level="bar", freq="W")] + ).sum() + tm.assert_frame_equal(result, expected) + + # Check integer level + result = df.groupby( + [Grouper(level=0, freq="W"), Grouper(level=1, freq="W")] + ).sum() + tm.assert_frame_equal(result, expected) + + def test_grouper_creation_bug(self): + # GH 8795 + df = DataFrame({"A": [0, 0, 1, 1, 2, 2], "B": [1, 2, 3, 4, 5, 6]}) + g = df.groupby("A") + expected = g.sum() + + g = df.groupby(Grouper(key="A")) + result = g.sum() + tm.assert_frame_equal(result, expected) + + msg = "Grouper axis keyword is deprecated and will be removed" + with tm.assert_produces_warning(FutureWarning, match=msg): + gpr = Grouper(key="A", axis=0) + g = df.groupby(gpr) + result = g.sum() + tm.assert_frame_equal(result, expected) + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = g.apply(lambda x: x.sum()) + expected["A"] = [0, 2, 4] + expected = expected.loc[:, ["A", "B"]] + tm.assert_frame_equal(result, expected) + + def test_grouper_creation_bug2(self): + # GH14334 + # Grouper(key=...) may be passed in a list + df = DataFrame( + {"A": [0, 0, 0, 1, 1, 1], "B": [1, 1, 2, 2, 3, 3], "C": [1, 2, 3, 4, 5, 6]} + ) + # Group by single column + expected = df.groupby("A").sum() + g = df.groupby([Grouper(key="A")]) + result = g.sum() + tm.assert_frame_equal(result, expected) + + # Group by two columns + # using a combination of strings and Grouper objects + expected = df.groupby(["A", "B"]).sum() + + # Group with two Grouper objects + g = df.groupby([Grouper(key="A"), Grouper(key="B")]) + result = g.sum() + tm.assert_frame_equal(result, expected) + + # Group with a string and a Grouper object + g = df.groupby(["A", Grouper(key="B")]) + result = g.sum() + tm.assert_frame_equal(result, expected) + + # Group with a Grouper object and a string + g = df.groupby([Grouper(key="A"), "B"]) + result = g.sum() + tm.assert_frame_equal(result, expected) + + def test_grouper_creation_bug3(self, unit): + # GH8866 + dti = date_range("20130101", periods=2, unit=unit) + mi = MultiIndex.from_product( + [list("ab"), range(2), dti], + names=["one", "two", "three"], + ) + ser = Series( + np.arange(8, dtype="int64"), + index=mi, + ) + result = ser.groupby(Grouper(level="three", freq="ME")).sum() + exp_dti = pd.DatetimeIndex( + [Timestamp("2013-01-31")], freq="ME", name="three" + ).as_unit(unit) + expected = Series( + [28], + index=exp_dti, + ) + tm.assert_series_equal(result, expected) + + # just specifying a level breaks + result = ser.groupby(Grouper(level="one")).sum() + expected = ser.groupby(level="one").sum() + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("func", [False, True]) + def test_grouper_returning_tuples(self, func): + # GH 22257 , both with dict and with callable + df = DataFrame({"X": ["A", "B", "A", "B"], "Y": [1, 4, 3, 2]}) + mapping = dict(zip(range(4), [("C", 5), ("D", 6)] * 2)) + + if func: + gb = df.groupby(by=lambda idx: mapping[idx], sort=False) + else: + gb = df.groupby(by=mapping, sort=False) + + name, expected = next(iter(gb)) + assert name == ("C", 5) + result = gb.get_group(name) + + tm.assert_frame_equal(result, expected) + + def test_grouper_column_and_index(self): + # GH 14327 + + # Grouping a multi-index frame by a column and an index level should + # be equivalent to resetting the index and grouping by two columns + idx = MultiIndex.from_tuples( + [("a", 1), ("a", 2), ("a", 3), ("b", 1), ("b", 2), ("b", 3)] + ) + idx.names = ["outer", "inner"] + df_multi = DataFrame( + {"A": np.arange(6), "B": ["one", "one", "two", "two", "one", "one"]}, + index=idx, + ) + result = df_multi.groupby(["B", Grouper(level="inner")]).mean(numeric_only=True) + expected = ( + df_multi.reset_index().groupby(["B", "inner"]).mean(numeric_only=True) + ) + tm.assert_frame_equal(result, expected) + + # Test the reverse grouping order + result = df_multi.groupby([Grouper(level="inner"), "B"]).mean(numeric_only=True) + expected = ( + df_multi.reset_index().groupby(["inner", "B"]).mean(numeric_only=True) + ) + tm.assert_frame_equal(result, expected) + + # Grouping a single-index frame by a column and the index should + # be equivalent to resetting the index and grouping by two columns + df_single = df_multi.reset_index("outer") + result = df_single.groupby(["B", Grouper(level="inner")]).mean( + numeric_only=True + ) + expected = ( + df_single.reset_index().groupby(["B", "inner"]).mean(numeric_only=True) + ) + tm.assert_frame_equal(result, expected) + + # Test the reverse grouping order + result = df_single.groupby([Grouper(level="inner"), "B"]).mean( + numeric_only=True + ) + expected = ( + df_single.reset_index().groupby(["inner", "B"]).mean(numeric_only=True) + ) + tm.assert_frame_equal(result, expected) + + def test_groupby_levels_and_columns(self): + # GH9344, GH9049 + idx_names = ["x", "y"] + idx = MultiIndex.from_tuples([(1, 1), (1, 2), (3, 4), (5, 6)], names=idx_names) + df = DataFrame(np.arange(12).reshape(-1, 3), index=idx) + + by_levels = df.groupby(level=idx_names).mean() + # reset_index changes columns dtype to object + by_columns = df.reset_index().groupby(idx_names).mean() + + # without casting, by_columns.columns is object-dtype + by_columns.columns = by_columns.columns.astype(np.int64) + tm.assert_frame_equal(by_levels, by_columns) + + def test_groupby_categorical_index_and_columns(self, observed): + # GH18432, adapted for GH25871 + columns = ["A", "B", "A", "B"] + categories = ["B", "A"] + data = np.array( + [[1, 2, 1, 2], [1, 2, 1, 2], [1, 2, 1, 2], [1, 2, 1, 2], [1, 2, 1, 2]], int + ) + cat_columns = CategoricalIndex(columns, categories=categories, ordered=True) + df = DataFrame(data=data, columns=cat_columns) + depr_msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + result = df.groupby(axis=1, level=0, observed=observed).sum() + expected_data = np.array([[4, 2], [4, 2], [4, 2], [4, 2], [4, 2]], int) + expected_columns = CategoricalIndex( + categories, categories=categories, ordered=True + ) + expected = DataFrame(data=expected_data, columns=expected_columns) + tm.assert_frame_equal(result, expected) + + # test transposed version + df = DataFrame(data.T, index=cat_columns) + msg = "The 'axis' keyword in DataFrame.groupby is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby(axis=0, level=0, observed=observed).sum() + expected = DataFrame(data=expected_data.T, index=expected_columns) + tm.assert_frame_equal(result, expected) + + def test_grouper_getting_correct_binner(self): + # GH 10063 + # using a non-time-based grouper and a time-based grouper + # and specifying levels + df = DataFrame( + {"A": 1}, + index=MultiIndex.from_product( + [list("ab"), date_range("20130101", periods=80)], names=["one", "two"] + ), + ) + result = df.groupby( + [Grouper(level="one"), Grouper(level="two", freq="ME")] + ).sum() + expected = DataFrame( + {"A": [31, 28, 21, 31, 28, 21]}, + index=MultiIndex.from_product( + [list("ab"), date_range("20130101", freq="ME", periods=3)], + names=["one", "two"], + ), + ) + tm.assert_frame_equal(result, expected) + + def test_grouper_iter(self, df): + gb = df.groupby("A") + msg = "DataFrameGroupBy.grouper is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + grouper = gb.grouper + result = sorted(grouper) + expected = ["bar", "foo"] + assert result == expected + + def test_empty_groups(self, df): + # see gh-1048 + with pytest.raises(ValueError, match="No group keys passed!"): + df.groupby([]) + + def test_groupby_grouper(self, df): + grouped = df.groupby("A") + msg = "DataFrameGroupBy.grouper is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + grouper = grouped.grouper + result = df.groupby(grouper).mean(numeric_only=True) + expected = grouped.mean(numeric_only=True) + tm.assert_frame_equal(result, expected) + + def test_groupby_dict_mapping(self): + # GH #679 + s = Series({"T1": 5}) + result = s.groupby({"T1": "T2"}).agg("sum") + expected = s.groupby(["T2"]).agg("sum") + tm.assert_series_equal(result, expected) + + s = Series([1.0, 2.0, 3.0, 4.0], index=list("abcd")) + mapping = {"a": 0, "b": 0, "c": 1, "d": 1} + + result = s.groupby(mapping).mean() + result2 = s.groupby(mapping).agg("mean") + exp_key = np.array([0, 0, 1, 1], dtype=np.int64) + expected = s.groupby(exp_key).mean() + expected2 = s.groupby(exp_key).mean() + tm.assert_series_equal(result, expected) + tm.assert_series_equal(result, result2) + tm.assert_series_equal(result, expected2) + + @pytest.mark.parametrize( + "index", + [ + [0, 1, 2, 3], + ["a", "b", "c", "d"], + [Timestamp(2021, 7, 28 + i) for i in range(4)], + ], + ) + def test_groupby_series_named_with_tuple(self, frame_or_series, index): + # GH 42731 + obj = frame_or_series([1, 2, 3, 4], index=index) + groups = Series([1, 0, 1, 0], index=index, name=("a", "a")) + result = obj.groupby(groups).last() + expected = frame_or_series([4, 3]) + expected.index.name = ("a", "a") + tm.assert_equal(result, expected) + + def test_groupby_grouper_f_sanity_checked(self): + dates = date_range("01-Jan-2013", periods=12, freq="MS") + ts = Series(np.random.default_rng(2).standard_normal(12), index=dates) + + # GH51979 + # simple check that the passed function doesn't operates on the whole index + msg = "'Timestamp' object is not subscriptable" + with pytest.raises(TypeError, match=msg): + ts.groupby(lambda key: key[0:6]) + + result = ts.groupby(lambda x: x).sum() + expected = ts.groupby(ts.index).sum() + expected.index.freq = None + tm.assert_series_equal(result, expected) + + def test_groupby_with_datetime_key(self): + # GH 51158 + df = DataFrame( + { + "id": ["a", "b"] * 3, + "b": date_range("2000-01-01", "2000-01-03", freq="9h"), + } + ) + grouper = Grouper(key="b", freq="D") + gb = df.groupby([grouper, "id"]) + + # test number of groups + expected = { + (Timestamp("2000-01-01"), "a"): [0, 2], + (Timestamp("2000-01-01"), "b"): [1], + (Timestamp("2000-01-02"), "a"): [4], + (Timestamp("2000-01-02"), "b"): [3, 5], + } + tm.assert_dict_equal(gb.groups, expected) + + # test number of group keys + assert len(gb.groups.keys()) == 4 + + def test_grouping_error_on_multidim_input(self, df): + msg = "Grouper for '' not 1-dimensional" + with pytest.raises(ValueError, match=msg): + Grouping(df.index, df[["A", "A"]]) + + def test_multiindex_passthru(self): + # GH 7997 + # regression from 0.14.1 + df = DataFrame([[1, 2, 3], [4, 5, 6], [7, 8, 9]]) + df.columns = MultiIndex.from_tuples([(0, 1), (1, 1), (2, 1)]) + + depr_msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + gb = df.groupby(axis=1, level=[0, 1]) + result = gb.first() + tm.assert_frame_equal(result, df) + + def test_multiindex_negative_level(self, multiindex_dataframe_random_data): + # GH 13901 + result = multiindex_dataframe_random_data.groupby(level=-1).sum() + expected = multiindex_dataframe_random_data.groupby(level="second").sum() + tm.assert_frame_equal(result, expected) + + result = multiindex_dataframe_random_data.groupby(level=-2).sum() + expected = multiindex_dataframe_random_data.groupby(level="first").sum() + tm.assert_frame_equal(result, expected) + + result = multiindex_dataframe_random_data.groupby(level=[-2, -1]).sum() + expected = multiindex_dataframe_random_data.sort_index() + tm.assert_frame_equal(result, expected) + + result = multiindex_dataframe_random_data.groupby(level=[-1, "first"]).sum() + expected = multiindex_dataframe_random_data.groupby( + level=["second", "first"] + ).sum() + tm.assert_frame_equal(result, expected) + + def test_multifunc_select_col_integer_cols(self, df): + df.columns = np.arange(len(df.columns)) + + # it works! + msg = "Passing a dictionary to SeriesGroupBy.agg is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + df.groupby(1, as_index=False)[2].agg({"Q": np.mean}) + + def test_multiindex_columns_empty_level(self): + lst = [["count", "values"], ["to filter", ""]] + midx = MultiIndex.from_tuples(lst) + + df = DataFrame([[1, "A"]], columns=midx) + + grouped = df.groupby("to filter").groups + assert grouped["A"] == [0] + + grouped = df.groupby([("to filter", "")]).groups + assert grouped["A"] == [0] + + df = DataFrame([[1, "A"], [2, "B"]], columns=midx) + + expected = df.groupby("to filter").groups + result = df.groupby([("to filter", "")]).groups + assert result == expected + + df = DataFrame([[1, "A"], [2, "A"]], columns=midx) + + expected = df.groupby("to filter").groups + result = df.groupby([("to filter", "")]).groups + tm.assert_dict_equal(result, expected) + + def test_groupby_multiindex_tuple(self): + # GH 17979 + df = DataFrame( + [[1, 2, 3, 4], [3, 4, 5, 6], [1, 4, 2, 3]], + columns=MultiIndex.from_arrays([["a", "b", "b", "c"], [1, 1, 2, 2]]), + ) + expected = df.groupby([("b", 1)]).groups + result = df.groupby(("b", 1)).groups + tm.assert_dict_equal(expected, result) + + df2 = DataFrame( + df.values, + columns=MultiIndex.from_arrays( + [["a", "b", "b", "c"], ["d", "d", "e", "e"]] + ), + ) + expected = df2.groupby([("b", "d")]).groups + result = df.groupby(("b", 1)).groups + tm.assert_dict_equal(expected, result) + + df3 = DataFrame(df.values, columns=[("a", "d"), ("b", "d"), ("b", "e"), "c"]) + expected = df3.groupby([("b", "d")]).groups + result = df.groupby(("b", 1)).groups + tm.assert_dict_equal(expected, result) + + def test_groupby_multiindex_partial_indexing_equivalence(self): + # GH 17977 + df = DataFrame( + [[1, 2, 3, 4], [3, 4, 5, 6], [1, 4, 2, 3]], + columns=MultiIndex.from_arrays([["a", "b", "b", "c"], [1, 1, 2, 2]]), + ) + + expected_mean = df.groupby([("a", 1)])[[("b", 1), ("b", 2)]].mean() + result_mean = df.groupby([("a", 1)])["b"].mean() + tm.assert_frame_equal(expected_mean, result_mean) + + expected_sum = df.groupby([("a", 1)])[[("b", 1), ("b", 2)]].sum() + result_sum = df.groupby([("a", 1)])["b"].sum() + tm.assert_frame_equal(expected_sum, result_sum) + + expected_count = df.groupby([("a", 1)])[[("b", 1), ("b", 2)]].count() + result_count = df.groupby([("a", 1)])["b"].count() + tm.assert_frame_equal(expected_count, result_count) + + expected_min = df.groupby([("a", 1)])[[("b", 1), ("b", 2)]].min() + result_min = df.groupby([("a", 1)])["b"].min() + tm.assert_frame_equal(expected_min, result_min) + + expected_max = df.groupby([("a", 1)])[[("b", 1), ("b", 2)]].max() + result_max = df.groupby([("a", 1)])["b"].max() + tm.assert_frame_equal(expected_max, result_max) + + expected_groups = df.groupby([("a", 1)])[[("b", 1), ("b", 2)]].groups + result_groups = df.groupby([("a", 1)])["b"].groups + tm.assert_dict_equal(expected_groups, result_groups) + + @pytest.mark.parametrize("sort", [True, False]) + def test_groupby_level(self, sort, multiindex_dataframe_random_data, df): + # GH 17537 + frame = multiindex_dataframe_random_data + deleveled = frame.reset_index() + + result0 = frame.groupby(level=0, sort=sort).sum() + result1 = frame.groupby(level=1, sort=sort).sum() + + expected0 = frame.groupby(deleveled["first"].values, sort=sort).sum() + expected1 = frame.groupby(deleveled["second"].values, sort=sort).sum() + + expected0.index.name = "first" + expected1.index.name = "second" + + assert result0.index.name == "first" + assert result1.index.name == "second" + + tm.assert_frame_equal(result0, expected0) + tm.assert_frame_equal(result1, expected1) + assert result0.index.name == frame.index.names[0] + assert result1.index.name == frame.index.names[1] + + # groupby level name + result0 = frame.groupby(level="first", sort=sort).sum() + result1 = frame.groupby(level="second", sort=sort).sum() + tm.assert_frame_equal(result0, expected0) + tm.assert_frame_equal(result1, expected1) + + # axis=1 + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + result0 = frame.T.groupby(level=0, axis=1, sort=sort).sum() + result1 = frame.T.groupby(level=1, axis=1, sort=sort).sum() + tm.assert_frame_equal(result0, expected0.T) + tm.assert_frame_equal(result1, expected1.T) + + # raise exception for non-MultiIndex + msg = "level > 0 or level < -1 only valid with MultiIndex" + with pytest.raises(ValueError, match=msg): + df.groupby(level=1) + + def test_groupby_level_index_names(self, axis): + # GH4014 this used to raise ValueError since 'exp'>1 (in py2) + df = DataFrame({"exp": ["A"] * 3 + ["B"] * 3, "var1": range(6)}).set_index( + "exp" + ) + if axis in (1, "columns"): + df = df.T + depr_msg = "DataFrame.groupby with axis=1 is deprecated" + else: + depr_msg = "The 'axis' keyword in DataFrame.groupby is deprecated" + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + df.groupby(level="exp", axis=axis) + msg = f"level name foo is not the name of the {df._get_axis_name(axis)}" + with pytest.raises(ValueError, match=msg): + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + df.groupby(level="foo", axis=axis) + + @pytest.mark.parametrize("sort", [True, False]) + def test_groupby_level_with_nas(self, sort): + # GH 17537 + index = MultiIndex( + levels=[[1, 0], [0, 1, 2, 3]], + codes=[[1, 1, 1, 1, 0, 0, 0, 0], [0, 1, 2, 3, 0, 1, 2, 3]], + ) + + # factorizing doesn't confuse things + s = Series(np.arange(8.0), index=index) + result = s.groupby(level=0, sort=sort).sum() + expected = Series([6.0, 22.0], index=[0, 1]) + tm.assert_series_equal(result, expected) + + index = MultiIndex( + levels=[[1, 0], [0, 1, 2, 3]], + codes=[[1, 1, 1, 1, -1, 0, 0, 0], [0, 1, 2, 3, 0, 1, 2, 3]], + ) + + # factorizing doesn't confuse things + s = Series(np.arange(8.0), index=index) + result = s.groupby(level=0, sort=sort).sum() + expected = Series([6.0, 18.0], index=[0.0, 1.0]) + tm.assert_series_equal(result, expected) + + def test_groupby_args(self, multiindex_dataframe_random_data): + # PR8618 and issue 8015 + frame = multiindex_dataframe_random_data + + msg = "You have to supply one of 'by' and 'level'" + with pytest.raises(TypeError, match=msg): + frame.groupby() + + msg = "You have to supply one of 'by' and 'level'" + with pytest.raises(TypeError, match=msg): + frame.groupby(by=None, level=None) + + @pytest.mark.parametrize( + "sort,labels", + [ + [True, [2, 2, 2, 0, 0, 1, 1, 3, 3, 3]], + [False, [0, 0, 0, 1, 1, 2, 2, 3, 3, 3]], + ], + ) + def test_level_preserve_order(self, sort, labels, multiindex_dataframe_random_data): + # GH 17537 + grouped = multiindex_dataframe_random_data.groupby(level=0, sort=sort) + exp_labels = np.array(labels, np.intp) + tm.assert_almost_equal(grouped._grouper.codes[0], exp_labels) + + def test_grouping_labels(self, multiindex_dataframe_random_data): + grouped = multiindex_dataframe_random_data.groupby( + multiindex_dataframe_random_data.index.get_level_values(0) + ) + exp_labels = np.array([2, 2, 2, 0, 0, 1, 1, 3, 3, 3], dtype=np.intp) + tm.assert_almost_equal(grouped._grouper.codes[0], exp_labels) + + def test_list_grouper_with_nat(self): + # GH 14715 + df = DataFrame({"date": date_range("1/1/2011", periods=365, freq="D")}) + df.iloc[-1] = pd.NaT + grouper = Grouper(key="date", freq="YS") + + # Grouper in a list grouping + result = df.groupby([grouper]) + expected = {Timestamp("2011-01-01"): Index(list(range(364)))} + tm.assert_dict_equal(result.groups, expected) + + # Test case without a list + result = df.groupby(grouper) + expected = {Timestamp("2011-01-01"): 365} + tm.assert_dict_equal(result.groups, expected) + + @pytest.mark.parametrize( + "func,expected", + [ + ( + "transform", + Series(name=2, dtype=np.float64), + ), + ( + "agg", + Series( + name=2, dtype=np.float64, index=Index([], dtype=np.float64, name=1) + ), + ), + ( + "apply", + Series( + name=2, dtype=np.float64, index=Index([], dtype=np.float64, name=1) + ), + ), + ], + ) + def test_evaluate_with_empty_groups(self, func, expected): + # 26208 + # test transform'ing empty groups + # (not testing other agg fns, because they return + # different index objects. + df = DataFrame({1: [], 2: []}) + g = df.groupby(1, group_keys=False) + result = getattr(g[2], func)(lambda x: x) + tm.assert_series_equal(result, expected) + + def test_groupby_empty(self): + # https://github.com/pandas-dev/pandas/issues/27190 + s = Series([], name="name", dtype="float64") + gr = s.groupby([]) + + result = gr.mean() + expected = s.set_axis(Index([], dtype=np.intp)) + tm.assert_series_equal(result, expected) + + # check group properties + assert len(gr._grouper.groupings) == 1 + tm.assert_numpy_array_equal( + gr._grouper.group_info[0], np.array([], dtype=np.dtype(np.intp)) + ) + + tm.assert_numpy_array_equal( + gr._grouper.group_info[1], np.array([], dtype=np.dtype(np.intp)) + ) + + assert gr._grouper.group_info[2] == 0 + + # check name + gb = s.groupby(s) + msg = "SeriesGroupBy.grouper is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + grouper = gb.grouper + result = grouper.names + expected = ["name"] + assert result == expected + + def test_groupby_level_index_value_all_na(self): + # issue 20519 + df = DataFrame( + [["x", np.nan, 10], [None, np.nan, 20]], columns=["A", "B", "C"] + ).set_index(["A", "B"]) + result = df.groupby(level=["A", "B"]).sum() + expected = DataFrame( + data=[], + index=MultiIndex( + levels=[Index(["x"], dtype="str"), Index([], dtype="float64")], + codes=[[], []], + names=["A", "B"], + ), + columns=["C"], + dtype="int64", + ) + tm.assert_frame_equal(result, expected) + + def test_groupby_multiindex_level_empty(self): + # https://github.com/pandas-dev/pandas/issues/31670 + df = DataFrame( + [[123, "a", 1.0], [123, "b", 2.0]], columns=["id", "category", "value"] + ) + df = df.set_index(["id", "category"]) + empty = df[df.value < 0] + result = empty.groupby("id").sum() + expected = DataFrame( + dtype="float64", + columns=["value"], + index=Index([], dtype=np.int64, name="id"), + ) + tm.assert_frame_equal(result, expected) + + +# get_group +# -------------------------------- + + +class TestGetGroup: + def test_get_group(self): + # GH 5267 + # be datelike friendly + df = DataFrame( + { + "DATE": pd.to_datetime( + [ + "10-Oct-2013", + "10-Oct-2013", + "10-Oct-2013", + "11-Oct-2013", + "11-Oct-2013", + "11-Oct-2013", + ] + ), + "label": ["foo", "foo", "bar", "foo", "foo", "bar"], + "VAL": [1, 2, 3, 4, 5, 6], + } + ) + + g = df.groupby("DATE") + key = next(iter(g.groups)) + result1 = g.get_group(key) + result2 = g.get_group(Timestamp(key).to_pydatetime()) + result3 = g.get_group(str(Timestamp(key))) + tm.assert_frame_equal(result1, result2) + tm.assert_frame_equal(result1, result3) + + g = df.groupby(["DATE", "label"]) + + key = next(iter(g.groups)) + result1 = g.get_group(key) + result2 = g.get_group((Timestamp(key[0]).to_pydatetime(), key[1])) + result3 = g.get_group((str(Timestamp(key[0])), key[1])) + tm.assert_frame_equal(result1, result2) + tm.assert_frame_equal(result1, result3) + + # must pass a same-length tuple with multiple keys + msg = "must supply a tuple to get_group with multiple grouping keys" + with pytest.raises(ValueError, match=msg): + g.get_group("foo") + with pytest.raises(ValueError, match=msg): + g.get_group("foo") + msg = "must supply a same-length tuple to get_group with multiple grouping keys" + with pytest.raises(ValueError, match=msg): + g.get_group(("foo", "bar", "baz")) + + def test_get_group_empty_bins(self, observed): + d = DataFrame([3, 1, 7, 6]) + bins = [0, 5, 10, 15] + g = d.groupby(pd.cut(d[0], bins), observed=observed) + + # TODO: should prob allow a str of Interval work as well + # IOW '(0, 5]' + result = g.get_group(pd.Interval(0, 5)) + expected = DataFrame([3, 1], index=[0, 1]) + tm.assert_frame_equal(result, expected) + + msg = r"Interval\(10, 15, closed='right'\)" + with pytest.raises(KeyError, match=msg): + g.get_group(pd.Interval(10, 15)) + + def test_get_group_grouped_by_tuple(self): + # GH 8121 + df = DataFrame([[(1,), (1, 2), (1,), (1, 2)]], index=["ids"]).T + gr = df.groupby("ids") + expected = DataFrame({"ids": [(1,), (1,)]}, index=[0, 2]) + result = gr.get_group((1,)) + tm.assert_frame_equal(result, expected) + + dt = pd.to_datetime(["2010-01-01", "2010-01-02", "2010-01-01", "2010-01-02"]) + df = DataFrame({"ids": [(x,) for x in dt]}) + gr = df.groupby("ids") + result = gr.get_group(("2010-01-01",)) + expected = DataFrame({"ids": [(dt[0],), (dt[0],)]}, index=[0, 2]) + tm.assert_frame_equal(result, expected) + + def test_get_group_grouped_by_tuple_with_lambda(self): + # GH 36158 + df = DataFrame( + { + "Tuples": ( + (x, y) + for x in [0, 1] + for y in np.random.default_rng(2).integers(3, 5, 5) + ) + } + ) + + gb = df.groupby("Tuples") + gb_lambda = df.groupby(lambda x: df.iloc[x, 0]) + + expected = gb.get_group(next(iter(gb.groups.keys()))) + result = gb_lambda.get_group(next(iter(gb_lambda.groups.keys()))) + + tm.assert_frame_equal(result, expected) + + def test_groupby_with_empty(self): + index = pd.DatetimeIndex(()) + data = () + series = Series(data, index, dtype=object) + grouper = Grouper(freq="D") + grouped = series.groupby(grouper) + assert next(iter(grouped), None) is None + + def test_groupby_with_single_column(self): + df = DataFrame({"a": list("abssbab")}) + tm.assert_frame_equal(df.groupby("a").get_group("a"), df.iloc[[0, 5]]) + # GH 13530 + exp = DataFrame( + index=Index(["a", "b", "s"], name="a"), columns=Index([], dtype="str") + ) + tm.assert_frame_equal(df.groupby("a").count(), exp) + tm.assert_frame_equal(df.groupby("a").sum(), exp) + + exp = df.iloc[[3, 4, 5]] + tm.assert_frame_equal(df.groupby("a").nth(1), exp) + + def test_gb_key_len_equal_axis_len(self): + # GH16843 + # test ensures that index and column keys are recognized correctly + # when number of keys equals axis length of groupby + df = DataFrame( + [["foo", "bar", "B", 1], ["foo", "bar", "B", 2], ["foo", "baz", "C", 3]], + columns=["first", "second", "third", "one"], + ) + df = df.set_index(["first", "second"]) + df = df.groupby(["first", "second", "third"]).size() + assert df.loc[("foo", "bar", "B")] == 2 + assert df.loc[("foo", "baz", "C")] == 1 + + +# groups & iteration +# -------------------------------- + + +class TestIteration: + def test_groups(self, df): + grouped = df.groupby(["A"]) + groups = grouped.groups + assert groups is grouped.groups # caching works + + for k, v in grouped.groups.items(): + assert (df.loc[v]["A"] == k).all() + + grouped = df.groupby(["A", "B"]) + groups = grouped.groups + assert groups is grouped.groups # caching works + + for k, v in grouped.groups.items(): + assert (df.loc[v]["A"] == k[0]).all() + assert (df.loc[v]["B"] == k[1]).all() + + def test_grouping_is_iterable(self, tsframe): + # this code path isn't used anywhere else + # not sure it's useful + grouped = tsframe.groupby([lambda x: x.weekday(), lambda x: x.year]) + + # test it works + for g in grouped._grouper.groupings[0]: + pass + + def test_multi_iter(self): + s = Series(np.arange(6)) + k1 = np.array(["a", "a", "a", "b", "b", "b"]) + k2 = np.array(["1", "2", "1", "2", "1", "2"]) + + grouped = s.groupby([k1, k2]) + + iterated = list(grouped) + expected = [ + ("a", "1", s[[0, 2]]), + ("a", "2", s[[1]]), + ("b", "1", s[[4]]), + ("b", "2", s[[3, 5]]), + ] + for i, ((one, two), three) in enumerate(iterated): + e1, e2, e3 = expected[i] + assert e1 == one + assert e2 == two + tm.assert_series_equal(three, e3) + + def test_multi_iter_frame(self, three_group): + k1 = np.array(["b", "b", "b", "a", "a", "a"]) + k2 = np.array(["1", "2", "1", "2", "1", "2"]) + df = DataFrame( + { + "v1": np.random.default_rng(2).standard_normal(6), + "v2": np.random.default_rng(2).standard_normal(6), + "k1": k1, + "k2": k2, + }, + index=["one", "two", "three", "four", "five", "six"], + ) + + grouped = df.groupby(["k1", "k2"]) + + # things get sorted! + iterated = list(grouped) + idx = df.index + expected = [ + ("a", "1", df.loc[idx[[4]]]), + ("a", "2", df.loc[idx[[3, 5]]]), + ("b", "1", df.loc[idx[[0, 2]]]), + ("b", "2", df.loc[idx[[1]]]), + ] + for i, ((one, two), three) in enumerate(iterated): + e1, e2, e3 = expected[i] + assert e1 == one + assert e2 == two + tm.assert_frame_equal(three, e3) + + # don't iterate through groups with no data + df["k1"] = np.array(["b", "b", "b", "a", "a", "a"]) + df["k2"] = np.array(["1", "1", "1", "2", "2", "2"]) + grouped = df.groupby(["k1", "k2"]) + # calling `dict` on a DataFrameGroupBy leads to a TypeError, + # we need to use a dictionary comprehension here + # pylint: disable-next=unnecessary-comprehension + groups = {key: gp for key, gp in grouped} # noqa: C416 + assert len(groups) == 2 + + # axis = 1 + three_levels = three_group.groupby(["A", "B", "C"]).mean() + depr_msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + grouped = three_levels.T.groupby(axis=1, level=(1, 2)) + for key, group in grouped: + pass + + def test_dictify(self, df): + dict(iter(df.groupby("A"))) + dict(iter(df.groupby(["A", "B"]))) + dict(iter(df["C"].groupby(df["A"]))) + dict(iter(df["C"].groupby([df["A"], df["B"]]))) + dict(iter(df.groupby("A")["C"])) + dict(iter(df.groupby(["A", "B"])["C"])) + + def test_groupby_with_small_elem(self): + # GH 8542 + # length=2 + df = DataFrame( + {"event": ["start", "start"], "change": [1234, 5678]}, + index=pd.DatetimeIndex(["2014-09-10", "2013-10-10"]), + ) + grouped = df.groupby([Grouper(freq="ME"), "event"]) + assert len(grouped.groups) == 2 + assert grouped.ngroups == 2 + assert (Timestamp("2014-09-30"), "start") in grouped.groups + assert (Timestamp("2013-10-31"), "start") in grouped.groups + + res = grouped.get_group((Timestamp("2014-09-30"), "start")) + tm.assert_frame_equal(res, df.iloc[[0], :]) + res = grouped.get_group((Timestamp("2013-10-31"), "start")) + tm.assert_frame_equal(res, df.iloc[[1], :]) + + df = DataFrame( + {"event": ["start", "start", "start"], "change": [1234, 5678, 9123]}, + index=pd.DatetimeIndex(["2014-09-10", "2013-10-10", "2014-09-15"]), + ) + grouped = df.groupby([Grouper(freq="ME"), "event"]) + assert len(grouped.groups) == 2 + assert grouped.ngroups == 2 + assert (Timestamp("2014-09-30"), "start") in grouped.groups + assert (Timestamp("2013-10-31"), "start") in grouped.groups + + res = grouped.get_group((Timestamp("2014-09-30"), "start")) + tm.assert_frame_equal(res, df.iloc[[0, 2], :]) + res = grouped.get_group((Timestamp("2013-10-31"), "start")) + tm.assert_frame_equal(res, df.iloc[[1], :]) + + # length=3 + df = DataFrame( + {"event": ["start", "start", "start"], "change": [1234, 5678, 9123]}, + index=pd.DatetimeIndex(["2014-09-10", "2013-10-10", "2014-08-05"]), + ) + grouped = df.groupby([Grouper(freq="ME"), "event"]) + assert len(grouped.groups) == 3 + assert grouped.ngroups == 3 + assert (Timestamp("2014-09-30"), "start") in grouped.groups + assert (Timestamp("2013-10-31"), "start") in grouped.groups + assert (Timestamp("2014-08-31"), "start") in grouped.groups + + res = grouped.get_group((Timestamp("2014-09-30"), "start")) + tm.assert_frame_equal(res, df.iloc[[0], :]) + res = grouped.get_group((Timestamp("2013-10-31"), "start")) + tm.assert_frame_equal(res, df.iloc[[1], :]) + res = grouped.get_group((Timestamp("2014-08-31"), "start")) + tm.assert_frame_equal(res, df.iloc[[2], :]) + + def test_grouping_string_repr(self): + # GH 13394 + mi = MultiIndex.from_arrays([list("AAB"), list("aba")]) + df = DataFrame([[1, 2, 3]], columns=mi) + gr = df.groupby(df[("A", "a")]) + + result = gr._grouper.groupings[0].__repr__() + expected = "Grouping(('A', 'a'))" + assert result == expected + + +def test_grouping_by_key_is_in_axis(): + # GH#50413 - Groupers specified by key are in-axis + df = DataFrame({"a": [1, 1, 2], "b": [1, 1, 2], "c": [3, 4, 5]}).set_index("a") + gb = df.groupby([Grouper(level="a"), Grouper(key="b")], as_index=False) + assert not gb._grouper.groupings[0].in_axis + assert gb._grouper.groupings[1].in_axis + + # Currently only in-axis groupings are including in the result when as_index=False; + # This is likely to change in the future. + msg = "A grouping .* was excluded from the result" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = gb.sum() + expected = DataFrame({"b": [1, 2], "c": [7, 5]}) + tm.assert_frame_equal(result, expected) + + +def test_grouper_groups(): + # GH#51182 check Grouper.groups does not raise AttributeError + df = DataFrame({"a": [1, 2, 3], "b": 1}) + grper = Grouper(key="a") + gb = df.groupby(grper) + + msg = "Use GroupBy.groups instead" + with tm.assert_produces_warning(FutureWarning, match=msg): + res = grper.groups + assert res is gb.groups + + msg = "Use GroupBy.grouper instead" + with tm.assert_produces_warning(FutureWarning, match=msg): + res = grper.grouper + assert res is gb._grouper + + msg = "Grouper.obj is deprecated and will be removed" + with tm.assert_produces_warning(FutureWarning, match=msg): + res = grper.obj + assert res is gb.obj + + msg = "Use Resampler.ax instead" + with tm.assert_produces_warning(FutureWarning, match=msg): + grper.ax + + msg = "Grouper.indexer is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + grper.indexer + + +@pytest.mark.parametrize("attr", ["group_index", "result_index", "group_arraylike"]) +def test_depr_grouping_attrs(attr): + # GH#56148 + df = DataFrame({"a": [1, 1, 2], "b": [3, 4, 5]}) + gb = df.groupby("a") + msg = f"{attr} is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + getattr(gb._grouper.groupings[0], attr) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_index_as_string.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_index_as_string.py new file mode 100644 index 0000000000000000000000000000000000000000..4aaf3de9a23b2416603947db312bb49eea343ba8 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_index_as_string.py @@ -0,0 +1,85 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm + + +@pytest.fixture(params=[["inner"], ["inner", "outer"]]) +def frame(request): + levels = request.param + df = pd.DataFrame( + { + "outer": ["a", "a", "a", "b", "b", "b"], + "inner": [1, 2, 3, 1, 2, 3], + "A": np.arange(6), + "B": ["one", "one", "two", "two", "one", "one"], + } + ) + if levels: + df = df.set_index(levels) + + return df + + +@pytest.fixture() +def series(): + df = pd.DataFrame( + { + "outer": ["a", "a", "a", "b", "b", "b"], + "inner": [1, 2, 3, 1, 2, 3], + "A": np.arange(6), + "B": ["one", "one", "two", "two", "one", "one"], + } + ) + s = df.set_index(["outer", "inner", "B"])["A"] + + return s + + +@pytest.mark.parametrize( + "key_strs,groupers", + [ + ("inner", pd.Grouper(level="inner")), # Index name + (["inner"], [pd.Grouper(level="inner")]), # List of index name + (["B", "inner"], ["B", pd.Grouper(level="inner")]), # Column and index + (["inner", "B"], [pd.Grouper(level="inner"), "B"]), # Index and column + ], +) +def test_grouper_index_level_as_string(frame, key_strs, groupers): + if "B" not in key_strs or "outer" in frame.columns: + result = frame.groupby(key_strs).mean(numeric_only=True) + expected = frame.groupby(groupers).mean(numeric_only=True) + else: + result = frame.groupby(key_strs).mean() + expected = frame.groupby(groupers).mean() + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "levels", + [ + "inner", + "outer", + "B", + ["inner"], + ["outer"], + ["B"], + ["inner", "outer"], + ["outer", "inner"], + ["inner", "outer", "B"], + ["B", "outer", "inner"], + ], +) +def test_grouper_index_level_as_string_series(series, levels): + # Compute expected result + if isinstance(levels, list): + groupers = [pd.Grouper(level=lv) for lv in levels] + else: + groupers = pd.Grouper(level=levels) + + expected = series.groupby(groupers).mean() + + # Compute and check result + result = series.groupby(levels).mean() + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_indexing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_indexing.py new file mode 100644 index 0000000000000000000000000000000000000000..664c52babac1381f77f2e2ee7266a9d41031f15e --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_indexing.py @@ -0,0 +1,333 @@ +# Test GroupBy._positional_selector positional grouped indexing GH#42864 + +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm + + +@pytest.mark.parametrize( + "arg, expected_rows", + [ + [0, [0, 1, 4]], + [2, [5]], + [5, []], + [-1, [3, 4, 7]], + [-2, [1, 6]], + [-6, []], + ], +) +def test_int(slice_test_df, slice_test_grouped, arg, expected_rows): + # Test single integer + result = slice_test_grouped._positional_selector[arg] + expected = slice_test_df.iloc[expected_rows] + + tm.assert_frame_equal(result, expected) + + +def test_slice(slice_test_df, slice_test_grouped): + # Test single slice + result = slice_test_grouped._positional_selector[0:3:2] + expected = slice_test_df.iloc[[0, 1, 4, 5]] + + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "arg, expected_rows", + [ + [[0, 2], [0, 1, 4, 5]], + [[0, 2, -1], [0, 1, 3, 4, 5, 7]], + [range(0, 3, 2), [0, 1, 4, 5]], + [{0, 2}, [0, 1, 4, 5]], + ], + ids=[ + "list", + "negative", + "range", + "set", + ], +) +def test_list(slice_test_df, slice_test_grouped, arg, expected_rows): + # Test lists of integers and integer valued iterables + result = slice_test_grouped._positional_selector[arg] + expected = slice_test_df.iloc[expected_rows] + + tm.assert_frame_equal(result, expected) + + +def test_ints(slice_test_df, slice_test_grouped): + # Test tuple of ints + result = slice_test_grouped._positional_selector[0, 2, -1] + expected = slice_test_df.iloc[[0, 1, 3, 4, 5, 7]] + + tm.assert_frame_equal(result, expected) + + +def test_slices(slice_test_df, slice_test_grouped): + # Test tuple of slices + result = slice_test_grouped._positional_selector[:2, -2:] + expected = slice_test_df.iloc[[0, 1, 2, 3, 4, 6, 7]] + + tm.assert_frame_equal(result, expected) + + +def test_mix(slice_test_df, slice_test_grouped): + # Test mixed tuple of ints and slices + result = slice_test_grouped._positional_selector[0, 1, -2:] + expected = slice_test_df.iloc[[0, 1, 2, 3, 4, 6, 7]] + + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "arg, expected_rows", + [ + [0, [0, 1, 4]], + [[0, 2, -1], [0, 1, 3, 4, 5, 7]], + [(slice(None, 2), slice(-2, None)), [0, 1, 2, 3, 4, 6, 7]], + ], +) +def test_as_index(slice_test_df, arg, expected_rows): + # Test the default as_index behaviour + result = slice_test_df.groupby("Group", sort=False)._positional_selector[arg] + expected = slice_test_df.iloc[expected_rows] + + tm.assert_frame_equal(result, expected) + + +def test_doc_examples(): + # Test the examples in the documentation + df = pd.DataFrame( + [["a", 1], ["a", 2], ["a", 3], ["b", 4], ["b", 5]], columns=["A", "B"] + ) + + grouped = df.groupby("A", as_index=False) + + result = grouped._positional_selector[1:2] + expected = pd.DataFrame([["a", 2], ["b", 5]], columns=["A", "B"], index=[1, 4]) + + tm.assert_frame_equal(result, expected) + + result = grouped._positional_selector[1, -1] + expected = pd.DataFrame( + [["a", 2], ["a", 3], ["b", 5]], columns=["A", "B"], index=[1, 2, 4] + ) + + tm.assert_frame_equal(result, expected) + + +@pytest.fixture() +def multiindex_data(): + rng = np.random.default_rng(2) + ndates = 100 + nitems = 20 + dates = pd.date_range("20130101", periods=ndates, freq="D") + items = [f"item {i}" for i in range(nitems)] + + data = {} + for date in dates: + nitems_for_date = nitems - rng.integers(0, 12) + levels = [ + (item, rng.integers(0, 10000) / 100, rng.integers(0, 10000) / 100) + for item in items[:nitems_for_date] + ] + levels.sort(key=lambda x: x[1]) + data[date] = levels + + return data + + +def _make_df_from_data(data): + rows = {} + for date in data: + for level in data[date]: + rows[(date, level[0])] = {"A": level[1], "B": level[2]} + + df = pd.DataFrame.from_dict(rows, orient="index") + df.index.names = ("Date", "Item") + return df + + +def test_multiindex(multiindex_data): + # Test the multiindex mentioned as the use-case in the documentation + df = _make_df_from_data(multiindex_data) + result = df.groupby("Date", as_index=False).nth(slice(3, -3)) + + sliced = {date: multiindex_data[date][3:-3] for date in multiindex_data} + expected = _make_df_from_data(sliced) + + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("arg", [1, 5, 30, 1000, -1, -5, -30, -1000]) +@pytest.mark.parametrize("method", ["head", "tail"]) +@pytest.mark.parametrize("simulated", [True, False]) +def test_against_head_and_tail(arg, method, simulated): + # Test gives the same results as grouped head and tail + n_groups = 100 + n_rows_per_group = 30 + + data = { + "group": [ + f"group {g}" for j in range(n_rows_per_group) for g in range(n_groups) + ], + "value": [ + f"group {g} row {j}" + for j in range(n_rows_per_group) + for g in range(n_groups) + ], + } + df = pd.DataFrame(data) + grouped = df.groupby("group", as_index=False) + size = arg if arg >= 0 else n_rows_per_group + arg + + if method == "head": + result = grouped._positional_selector[:arg] + + if simulated: + indices = [ + j * n_groups + i + for j in range(size) + for i in range(n_groups) + if j * n_groups + i < n_groups * n_rows_per_group + ] + expected = df.iloc[indices] + + else: + expected = grouped.head(arg) + + else: + result = grouped._positional_selector[-arg:] + + if simulated: + indices = [ + (n_rows_per_group + j - size) * n_groups + i + for j in range(size) + for i in range(n_groups) + if (n_rows_per_group + j - size) * n_groups + i >= 0 + ] + expected = df.iloc[indices] + + else: + expected = grouped.tail(arg) + + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("start", [None, 0, 1, 10, -1, -10]) +@pytest.mark.parametrize("stop", [None, 0, 1, 10, -1, -10]) +@pytest.mark.parametrize("step", [None, 1, 5]) +def test_against_df_iloc(start, stop, step): + # Test that a single group gives the same results as DataFrame.iloc + n_rows = 30 + + data = { + "group": ["group 0"] * n_rows, + "value": list(range(n_rows)), + } + df = pd.DataFrame(data) + grouped = df.groupby("group", as_index=False) + + result = grouped._positional_selector[start:stop:step] + expected = df.iloc[start:stop:step] + + tm.assert_frame_equal(result, expected) + + +def test_series(): + # Test grouped Series + ser = pd.Series([1, 2, 3, 4, 5], index=["a", "a", "a", "b", "b"]) + grouped = ser.groupby(level=0) + result = grouped._positional_selector[1:2] + expected = pd.Series([2, 5], index=["a", "b"]) + + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("step", [1, 2, 3, 4, 5]) +def test_step(step): + # Test slice with various step values + data = [["x", f"x{i}"] for i in range(5)] + data += [["y", f"y{i}"] for i in range(4)] + data += [["z", f"z{i}"] for i in range(3)] + df = pd.DataFrame(data, columns=["A", "B"]) + + grouped = df.groupby("A", as_index=False) + + result = grouped._positional_selector[::step] + + data = [["x", f"x{i}"] for i in range(0, 5, step)] + data += [["y", f"y{i}"] for i in range(0, 4, step)] + data += [["z", f"z{i}"] for i in range(0, 3, step)] + + index = [0 + i for i in range(0, 5, step)] + index += [5 + i for i in range(0, 4, step)] + index += [9 + i for i in range(0, 3, step)] + + expected = pd.DataFrame(data, columns=["A", "B"], index=index) + + tm.assert_frame_equal(result, expected) + + +@pytest.fixture() +def column_group_df(): + return pd.DataFrame( + [[0, 1, 2, 3, 4, 5, 6], [0, 0, 1, 0, 1, 0, 2]], + columns=["A", "B", "C", "D", "E", "F", "G"], + ) + + +def test_column_axis(column_group_df): + msg = "DataFrame.groupby with axis=1" + with tm.assert_produces_warning(FutureWarning, match=msg): + g = column_group_df.groupby(column_group_df.iloc[1], axis=1) + result = g._positional_selector[1:-1] + expected = column_group_df.iloc[:, [1, 3]] + + tm.assert_frame_equal(result, expected) + + +def test_columns_on_iter(): + # GitHub issue #44821 + df = pd.DataFrame({k: range(10) for k in "ABC"}) + + # Group-by and select columns + cols = ["A", "B"] + for _, dg in df.groupby(df.A < 4)[cols]: + tm.assert_index_equal(dg.columns, pd.Index(cols)) + assert "C" not in dg.columns + + +@pytest.mark.parametrize("func", [list, pd.Index, pd.Series, np.array]) +def test_groupby_duplicated_columns(func): + # GH#44924 + df = pd.DataFrame( + { + "A": [1, 2], + "B": [3, 3], + "C": ["G", "G"], + } + ) + result = df.groupby("C")[func(["A", "B", "A"])].mean() + expected = pd.DataFrame( + [[1.5, 3.0, 1.5]], columns=["A", "B", "A"], index=pd.Index(["G"], name="C") + ) + tm.assert_frame_equal(result, expected) + + +def test_groupby_get_nonexisting_groups(): + # GH#32492 + df = pd.DataFrame( + data={ + "A": ["a1", "a2", None], + "B": ["b1", "b2", "b1"], + "val": [1, 2, 3], + } + ) + grps = df.groupby(by=["A", "B"]) + + msg = "('a2', 'b1')" + with pytest.raises(KeyError, match=msg): + grps.get_group(("a2", "b1")) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_libgroupby.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_libgroupby.py new file mode 100644 index 0000000000000000000000000000000000000000..35b8fa93b8e033b8dd9287bc7de8e1ca18ade439 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_libgroupby.py @@ -0,0 +1,331 @@ +import numpy as np +import pytest + +from pandas._libs import groupby as libgroupby +from pandas._libs.groupby import ( + group_cumprod, + group_cumsum, + group_mean, + group_sum, + group_var, +) + +from pandas.core.dtypes.common import ensure_platform_int + +from pandas import isna +import pandas._testing as tm + + +class GroupVarTestMixin: + def test_group_var_generic_1d(self): + prng = np.random.default_rng(2) + + out = (np.nan * np.ones((5, 1))).astype(self.dtype) + counts = np.zeros(5, dtype="int64") + values = 10 * prng.random((15, 1)).astype(self.dtype) + labels = np.tile(np.arange(5), (3,)).astype("intp") + + expected_out = ( + np.squeeze(values).reshape((5, 3), order="F").std(axis=1, ddof=1) ** 2 + )[:, np.newaxis] + expected_counts = counts + 3 + + self.algo(out, counts, values, labels) + assert np.allclose(out, expected_out, self.rtol) + tm.assert_numpy_array_equal(counts, expected_counts) + + def test_group_var_generic_1d_flat_labels(self): + prng = np.random.default_rng(2) + + out = (np.nan * np.ones((1, 1))).astype(self.dtype) + counts = np.zeros(1, dtype="int64") + values = 10 * prng.random((5, 1)).astype(self.dtype) + labels = np.zeros(5, dtype="intp") + + expected_out = np.array([[values.std(ddof=1) ** 2]]) + expected_counts = counts + 5 + + self.algo(out, counts, values, labels) + + assert np.allclose(out, expected_out, self.rtol) + tm.assert_numpy_array_equal(counts, expected_counts) + + def test_group_var_generic_2d_all_finite(self): + prng = np.random.default_rng(2) + + out = (np.nan * np.ones((5, 2))).astype(self.dtype) + counts = np.zeros(5, dtype="int64") + values = 10 * prng.random((10, 2)).astype(self.dtype) + labels = np.tile(np.arange(5), (2,)).astype("intp") + + expected_out = np.std(values.reshape(2, 5, 2), ddof=1, axis=0) ** 2 + expected_counts = counts + 2 + + self.algo(out, counts, values, labels) + assert np.allclose(out, expected_out, self.rtol) + tm.assert_numpy_array_equal(counts, expected_counts) + + def test_group_var_generic_2d_some_nan(self): + prng = np.random.default_rng(2) + + out = (np.nan * np.ones((5, 2))).astype(self.dtype) + counts = np.zeros(5, dtype="int64") + values = 10 * prng.random((10, 2)).astype(self.dtype) + values[:, 1] = np.nan + labels = np.tile(np.arange(5), (2,)).astype("intp") + + expected_out = np.vstack( + [ + values[:, 0].reshape(5, 2, order="F").std(ddof=1, axis=1) ** 2, + np.nan * np.ones(5), + ] + ).T.astype(self.dtype) + expected_counts = counts + 2 + + self.algo(out, counts, values, labels) + tm.assert_almost_equal(out, expected_out, rtol=0.5e-06) + tm.assert_numpy_array_equal(counts, expected_counts) + + def test_group_var_constant(self): + # Regression test from GH 10448. + + out = np.array([[np.nan]], dtype=self.dtype) + counts = np.array([0], dtype="int64") + values = 0.832845131556193 * np.ones((3, 1), dtype=self.dtype) + labels = np.zeros(3, dtype="intp") + + self.algo(out, counts, values, labels) + + assert counts[0] == 3 + assert out[0, 0] >= 0 + tm.assert_almost_equal(out[0, 0], 0.0) + + +class TestGroupVarFloat64(GroupVarTestMixin): + __test__ = True + + algo = staticmethod(group_var) + dtype = np.float64 + rtol = 1e-5 + + def test_group_var_large_inputs(self): + prng = np.random.default_rng(2) + + out = np.array([[np.nan]], dtype=self.dtype) + counts = np.array([0], dtype="int64") + values = (prng.random(10**6) + 10**12).astype(self.dtype) + values.shape = (10**6, 1) + labels = np.zeros(10**6, dtype="intp") + + self.algo(out, counts, values, labels) + + assert counts[0] == 10**6 + tm.assert_almost_equal(out[0, 0], 1.0 / 12, rtol=0.5e-3) + + +class TestGroupVarFloat32(GroupVarTestMixin): + __test__ = True + + algo = staticmethod(group_var) + dtype = np.float32 + rtol = 1e-2 + + +@pytest.mark.parametrize("dtype", ["float32", "float64"]) +def test_group_ohlc(dtype): + obj = np.array(np.random.default_rng(2).standard_normal(20), dtype=dtype) + + bins = np.array([6, 12, 20]) + out = np.zeros((3, 4), dtype) + counts = np.zeros(len(out), dtype=np.int64) + labels = ensure_platform_int(np.repeat(np.arange(3), np.diff(np.r_[0, bins]))) + + func = libgroupby.group_ohlc + func(out, counts, obj[:, None], labels) + + def _ohlc(group): + if isna(group).all(): + return np.repeat(np.nan, 4) + return [group[0], group.max(), group.min(), group[-1]] + + expected = np.array([_ohlc(obj[:6]), _ohlc(obj[6:12]), _ohlc(obj[12:])]) + + tm.assert_almost_equal(out, expected) + tm.assert_numpy_array_equal(counts, np.array([6, 6, 8], dtype=np.int64)) + + obj[:6] = np.nan + func(out, counts, obj[:, None], labels) + expected[0] = np.nan + tm.assert_almost_equal(out, expected) + + +def _check_cython_group_transform_cumulative(pd_op, np_op, dtype): + """ + Check a group transform that executes a cumulative function. + + Parameters + ---------- + pd_op : callable + The pandas cumulative function. + np_op : callable + The analogous one in NumPy. + dtype : type + The specified dtype of the data. + """ + is_datetimelike = False + + data = np.array([[1], [2], [3], [4]], dtype=dtype) + answer = np.zeros_like(data) + + labels = np.array([0, 0, 0, 0], dtype=np.intp) + ngroups = 1 + pd_op(answer, data, labels, ngroups, is_datetimelike) + + tm.assert_numpy_array_equal(np_op(data), answer[:, 0], check_dtype=False) + + +@pytest.mark.parametrize("np_dtype", ["int64", "uint64", "float32", "float64"]) +def test_cython_group_transform_cumsum(np_dtype): + # see gh-4095 + dtype = np.dtype(np_dtype).type + pd_op, np_op = group_cumsum, np.cumsum + _check_cython_group_transform_cumulative(pd_op, np_op, dtype) + + +def test_cython_group_transform_cumprod(): + # see gh-4095 + dtype = np.float64 + pd_op, np_op = group_cumprod, np.cumprod + _check_cython_group_transform_cumulative(pd_op, np_op, dtype) + + +def test_cython_group_transform_algos(): + # see gh-4095 + is_datetimelike = False + + # with nans + labels = np.array([0, 0, 0, 0, 0], dtype=np.intp) + ngroups = 1 + + data = np.array([[1], [2], [3], [np.nan], [4]], dtype="float64") + actual = np.zeros_like(data) + actual.fill(np.nan) + group_cumprod(actual, data, labels, ngroups, is_datetimelike) + expected = np.array([1, 2, 6, np.nan, 24], dtype="float64") + tm.assert_numpy_array_equal(actual[:, 0], expected) + + actual = np.zeros_like(data) + actual.fill(np.nan) + group_cumsum(actual, data, labels, ngroups, is_datetimelike) + expected = np.array([1, 3, 6, np.nan, 10], dtype="float64") + tm.assert_numpy_array_equal(actual[:, 0], expected) + + # timedelta + is_datetimelike = True + data = np.array([np.timedelta64(1, "ns")] * 5, dtype="m8[ns]")[:, None] + actual = np.zeros_like(data, dtype="int64") + group_cumsum(actual, data.view("int64"), labels, ngroups, is_datetimelike) + expected = np.array( + [ + np.timedelta64(1, "ns"), + np.timedelta64(2, "ns"), + np.timedelta64(3, "ns"), + np.timedelta64(4, "ns"), + np.timedelta64(5, "ns"), + ] + ) + tm.assert_numpy_array_equal(actual[:, 0].view("m8[ns]"), expected) + + +def test_cython_group_mean_datetimelike(): + actual = np.zeros(shape=(1, 1), dtype="float64") + counts = np.array([0], dtype="int64") + data = ( + np.array( + [np.timedelta64(2, "ns"), np.timedelta64(4, "ns"), np.timedelta64("NaT")], + dtype="m8[ns]", + )[:, None] + .view("int64") + .astype("float64") + ) + labels = np.zeros(len(data), dtype=np.intp) + + group_mean(actual, counts, data, labels, is_datetimelike=True) + + tm.assert_numpy_array_equal(actual[:, 0], np.array([3], dtype="float64")) + + +def test_cython_group_mean_wrong_min_count(): + actual = np.zeros(shape=(1, 1), dtype="float64") + counts = np.zeros(1, dtype="int64") + data = np.zeros(1, dtype="float64")[:, None] + labels = np.zeros(1, dtype=np.intp) + + with pytest.raises(AssertionError, match="min_count"): + group_mean(actual, counts, data, labels, is_datetimelike=True, min_count=0) + + +def test_cython_group_mean_not_datetimelike_but_has_NaT_values(): + actual = np.zeros(shape=(1, 1), dtype="float64") + counts = np.array([0], dtype="int64") + data = ( + np.array( + [np.timedelta64("NaT"), np.timedelta64("NaT")], + dtype="m8[ns]", + )[:, None] + .view("int64") + .astype("float64") + ) + labels = np.zeros(len(data), dtype=np.intp) + + group_mean(actual, counts, data, labels, is_datetimelike=False) + + tm.assert_numpy_array_equal( + actual[:, 0], np.array(np.divide(np.add(data[0], data[1]), 2), dtype="float64") + ) + + +def test_cython_group_mean_Inf_at_begining_and_end(): + # GH 50367 + actual = np.array([[np.nan, np.nan], [np.nan, np.nan]], dtype="float64") + counts = np.array([0, 0], dtype="int64") + data = np.array( + [[np.inf, 1.0], [1.0, 2.0], [2.0, 3.0], [3.0, 4.0], [4.0, 5.0], [5, np.inf]], + dtype="float64", + ) + labels = np.array([0, 1, 0, 1, 0, 1], dtype=np.intp) + + group_mean(actual, counts, data, labels, is_datetimelike=False) + + expected = np.array([[np.inf, 3], [3, np.inf]], dtype="float64") + + tm.assert_numpy_array_equal( + actual, + expected, + ) + + +@pytest.mark.parametrize( + "values, out", + [ + ([[np.inf], [np.inf], [np.inf]], [[np.inf], [np.inf]]), + ([[np.inf], [np.inf], [-np.inf]], [[np.inf], [np.nan]]), + ([[np.inf], [-np.inf], [np.inf]], [[np.inf], [np.nan]]), + ([[np.inf], [-np.inf], [-np.inf]], [[np.inf], [-np.inf]]), + ], +) +def test_cython_group_sum_Inf_at_begining_and_end(values, out): + # GH #53606 + actual = np.array([[np.nan], [np.nan]], dtype="float64") + counts = np.array([0, 0], dtype="int64") + data = np.array(values, dtype="float64") + labels = np.array([0, 1, 1], dtype=np.intp) + + group_sum(actual, counts, data, labels, None, is_datetimelike=False) + + expected = np.array(out, dtype="float64") + + tm.assert_numpy_array_equal( + actual, + expected, + ) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_missing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_missing.py new file mode 100644 index 0000000000000000000000000000000000000000..3180a92be1236688e044758bf2334a0985e7aee1 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_missing.py @@ -0,0 +1,163 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + DataFrame, + Index, + date_range, +) +import pandas._testing as tm + + +@pytest.mark.parametrize("func", ["ffill", "bfill"]) +def test_groupby_column_index_name_lost_fill_funcs(func): + # GH: 29764 groupby loses index sometimes + df = DataFrame( + [[1, 1.0, -1.0], [1, np.nan, np.nan], [1, 2.0, -2.0]], + columns=Index(["type", "a", "b"], name="idx"), + ) + df_grouped = df.groupby(["type"])[["a", "b"]] + result = getattr(df_grouped, func)().columns + expected = Index(["a", "b"], name="idx") + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize("func", ["ffill", "bfill"]) +def test_groupby_fill_duplicate_column_names(func): + # GH: 25610 ValueError with duplicate column names + df1 = DataFrame({"field1": [1, 3, 4], "field2": [1, 3, 4]}) + df2 = DataFrame({"field1": [1, np.nan, 4]}) + df_grouped = pd.concat([df1, df2], axis=1).groupby(by=["field2"]) + expected = DataFrame( + [[1, 1.0], [3, np.nan], [4, 4.0]], columns=["field1", "field1"] + ) + result = getattr(df_grouped, func)() + tm.assert_frame_equal(result, expected) + + +def test_ffill_missing_arguments(): + # GH 14955 + df = DataFrame({"a": [1, 2], "b": [1, 1]}) + msg = "DataFrameGroupBy.fillna is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + with pytest.raises(ValueError, match="Must specify a fill"): + df.groupby("b").fillna() + + +@pytest.mark.parametrize( + "method, expected", [("ffill", [None, "a", "a"]), ("bfill", ["a", "a", None])] +) +def test_fillna_with_string_dtype(method, expected): + # GH 40250 + df = DataFrame({"a": pd.array([None, "a", None], dtype="string"), "b": [0, 0, 0]}) + grp = df.groupby("b") + msg = "DataFrameGroupBy.fillna is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = grp.fillna(method=method) + expected = DataFrame({"a": pd.array(expected, dtype="string")}) + tm.assert_frame_equal(result, expected) + + +def test_fill_consistency(): + # GH9221 + # pass thru keyword arguments to the generated wrapper + # are set if the passed kw is None (only) + df = DataFrame( + index=pd.MultiIndex.from_product( + [["value1", "value2"], date_range("2014-01-01", "2014-01-06")] + ), + columns=Index(["1", "2"], name="id"), + ) + df["1"] = [ + np.nan, + 1, + np.nan, + np.nan, + 11, + np.nan, + np.nan, + 2, + np.nan, + np.nan, + 22, + np.nan, + ] + df["2"] = [ + np.nan, + 3, + np.nan, + np.nan, + 33, + np.nan, + np.nan, + 4, + np.nan, + np.nan, + 44, + np.nan, + ] + + msg = "The 'axis' keyword in DataFrame.groupby is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = df.groupby(level=0, axis=0).fillna(method="ffill") + + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.T.groupby(level=0, axis=1).fillna(method="ffill").T + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("method", ["ffill", "bfill"]) +@pytest.mark.parametrize("dropna", [True, False]) +@pytest.mark.parametrize("has_nan_group", [True, False]) +def test_ffill_handles_nan_groups(dropna, method, has_nan_group): + # GH 34725 + + df_without_nan_rows = DataFrame([(1, 0.1), (2, 0.2)]) + + ridx = [-1, 0, -1, -1, 1, -1] + df = df_without_nan_rows.reindex(ridx).reset_index(drop=True) + + group_b = np.nan if has_nan_group else "b" + df["group_col"] = pd.Series(["a"] * 3 + [group_b] * 3) + + grouped = df.groupby(by="group_col", dropna=dropna) + result = getattr(grouped, method)(limit=None) + + expected_rows = { + ("ffill", True, True): [-1, 0, 0, -1, -1, -1], + ("ffill", True, False): [-1, 0, 0, -1, 1, 1], + ("ffill", False, True): [-1, 0, 0, -1, 1, 1], + ("ffill", False, False): [-1, 0, 0, -1, 1, 1], + ("bfill", True, True): [0, 0, -1, -1, -1, -1], + ("bfill", True, False): [0, 0, -1, 1, 1, -1], + ("bfill", False, True): [0, 0, -1, 1, 1, -1], + ("bfill", False, False): [0, 0, -1, 1, 1, -1], + } + + ridx = expected_rows.get((method, dropna, has_nan_group)) + expected = df_without_nan_rows.reindex(ridx).reset_index(drop=True) + # columns are a 'take' on df.columns, which are object dtype + expected.columns = expected.columns.astype(object) + + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("min_count, value", [(2, np.nan), (-1, 1.0)]) +@pytest.mark.parametrize("func", ["first", "last", "max", "min"]) +def test_min_count(func, min_count, value): + # GH#37821 + df = DataFrame({"a": [1] * 3, "b": [1, np.nan, np.nan], "c": [np.nan] * 3}) + result = getattr(df.groupby("a"), func)(min_count=min_count) + expected = DataFrame({"b": [value], "c": [np.nan]}, index=Index([1], name="a")) + tm.assert_frame_equal(result, expected) + + +def test_indices_with_missing(): + # GH 9304 + df = DataFrame({"a": [1, 1, np.nan], "b": [2, 3, 4], "c": [5, 6, 7]}) + g = df.groupby(["a", "b"]) + result = g.indices + expected = {(1.0, 2): np.array([0]), (1.0, 3): np.array([1])} + assert result == expected diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_numba.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_numba.py new file mode 100644 index 0000000000000000000000000000000000000000..f2c138c86a046a27c93e402d4864d1351275c317 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_numba.py @@ -0,0 +1,89 @@ +import pytest + +from pandas.compat import is_platform_arm + +from pandas import ( + DataFrame, + Series, + option_context, +) +import pandas._testing as tm +from pandas.util.version import Version + +pytestmark = [pytest.mark.single_cpu] + +numba = pytest.importorskip("numba") +pytestmark.append( + pytest.mark.skipif( + Version(numba.__version__) == Version("0.61") and is_platform_arm(), + reason=f"Segfaults on ARM platforms with numba {numba.__version__}", + ) +) + + +@pytest.mark.filterwarnings("ignore") +# Filter warnings when parallel=True and the function can't be parallelized by Numba +class TestEngine: + def test_cython_vs_numba_frame( + self, sort, nogil, parallel, nopython, numba_supported_reductions + ): + func, kwargs = numba_supported_reductions + df = DataFrame({"a": [3, 2, 3, 2], "b": range(4), "c": range(1, 5)}) + engine_kwargs = {"nogil": nogil, "parallel": parallel, "nopython": nopython} + gb = df.groupby("a", sort=sort) + result = getattr(gb, func)( + engine="numba", engine_kwargs=engine_kwargs, **kwargs + ) + expected = getattr(gb, func)(**kwargs) + tm.assert_frame_equal(result, expected) + + def test_cython_vs_numba_getitem( + self, sort, nogil, parallel, nopython, numba_supported_reductions + ): + func, kwargs = numba_supported_reductions + df = DataFrame({"a": [3, 2, 3, 2], "b": range(4), "c": range(1, 5)}) + engine_kwargs = {"nogil": nogil, "parallel": parallel, "nopython": nopython} + gb = df.groupby("a", sort=sort)["c"] + result = getattr(gb, func)( + engine="numba", engine_kwargs=engine_kwargs, **kwargs + ) + expected = getattr(gb, func)(**kwargs) + tm.assert_series_equal(result, expected) + + def test_cython_vs_numba_series( + self, sort, nogil, parallel, nopython, numba_supported_reductions + ): + func, kwargs = numba_supported_reductions + ser = Series(range(3), index=[1, 2, 1], name="foo") + engine_kwargs = {"nogil": nogil, "parallel": parallel, "nopython": nopython} + gb = ser.groupby(level=0, sort=sort) + result = getattr(gb, func)( + engine="numba", engine_kwargs=engine_kwargs, **kwargs + ) + expected = getattr(gb, func)(**kwargs) + tm.assert_series_equal(result, expected) + + def test_as_index_false_unsupported(self, numba_supported_reductions): + func, kwargs = numba_supported_reductions + df = DataFrame({"a": [3, 2, 3, 2], "b": range(4), "c": range(1, 5)}) + gb = df.groupby("a", as_index=False) + with pytest.raises(NotImplementedError, match="as_index=False"): + getattr(gb, func)(engine="numba", **kwargs) + + def test_axis_1_unsupported(self, numba_supported_reductions): + func, kwargs = numba_supported_reductions + df = DataFrame({"a": [3, 2, 3, 2], "b": range(4), "c": range(1, 5)}) + gb = df.groupby("a", axis=1) + with pytest.raises(NotImplementedError, match="axis=1"): + getattr(gb, func)(engine="numba", **kwargs) + + def test_no_engine_doesnt_raise(self): + # GH55520 + df = DataFrame({"a": [3, 2, 3, 2], "b": range(4), "c": range(1, 5)}) + gb = df.groupby("a") + # Make sure behavior of functions w/out engine argument don't raise + # when the global use_numba option is set + with option_context("compute.use_numba", True): + res = gb.agg({"b": "first"}) + expected = gb.agg({"b": "first"}) + tm.assert_frame_equal(res, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_numeric_only.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_numeric_only.py new file mode 100644 index 0000000000000000000000000000000000000000..3c1ed20ddcb165db2444146c3e13ce7d7a8f874a --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_numeric_only.py @@ -0,0 +1,532 @@ +import re + +import numpy as np +import pytest + +from pandas._libs import lib + +import pandas as pd +from pandas import ( + DataFrame, + Index, + Series, + Timestamp, + date_range, +) +import pandas._testing as tm +from pandas.tests.groupby import get_groupby_method_args + + +class TestNumericOnly: + # make sure that we are passing thru kwargs to our agg functions + + @pytest.fixture + def df(self): + # GH3668 + # GH5724 + df = DataFrame( + { + "group": [1, 1, 2], + "int": [1, 2, 3], + "float": [4.0, 5.0, 6.0], + "string": Series(["a", "b", "c"], dtype="str"), + "object": Series(["a", "b", "c"], dtype=object), + "category_string": Series(list("abc")).astype("category"), + "category_int": [7, 8, 9], + "datetime": date_range("20130101", periods=3), + "datetimetz": date_range("20130101", periods=3, tz="US/Eastern"), + "timedelta": pd.timedelta_range("1 s", periods=3, freq="s"), + }, + columns=[ + "group", + "int", + "float", + "string", + "object", + "category_string", + "category_int", + "datetime", + "datetimetz", + "timedelta", + ], + ) + return df + + @pytest.mark.parametrize("method", ["mean", "median"]) + def test_averages(self, df, method): + # mean / median + expected_columns_numeric = Index(["int", "float", "category_int"]) + + gb = df.groupby("group") + expected = DataFrame( + { + "category_int": [7.5, 9], + "float": [4.5, 6.0], + "timedelta": [pd.Timedelta("1.5s"), pd.Timedelta("3s")], + "int": [1.5, 3], + "datetime": [ + Timestamp("2013-01-01 12:00:00"), + Timestamp("2013-01-03 00:00:00"), + ], + "datetimetz": [ + Timestamp("2013-01-01 12:00:00", tz="US/Eastern"), + Timestamp("2013-01-03 00:00:00", tz="US/Eastern"), + ], + }, + index=Index([1, 2], name="group"), + columns=[ + "int", + "float", + "category_int", + ], + ) + + result = getattr(gb, method)(numeric_only=True) + tm.assert_frame_equal(result.reindex_like(expected), expected) + + expected_columns = expected.columns + + self._check(df, method, expected_columns, expected_columns_numeric) + + @pytest.mark.parametrize("method", ["min", "max"]) + def test_extrema(self, df, method): + # TODO: min, max *should* handle + # categorical (ordered) dtype + + expected_columns = Index( + [ + "int", + "float", + "string", + "category_int", + "datetime", + "datetimetz", + "timedelta", + ] + ) + expected_columns_numeric = expected_columns + + self._check(df, method, expected_columns, expected_columns_numeric) + + @pytest.mark.parametrize("method", ["first", "last"]) + def test_first_last(self, df, method): + expected_columns = Index( + [ + "int", + "float", + "string", + "object", + "category_string", + "category_int", + "datetime", + "datetimetz", + "timedelta", + ] + ) + expected_columns_numeric = expected_columns + + self._check(df, method, expected_columns, expected_columns_numeric) + + @pytest.mark.parametrize("method", ["sum", "cumsum"]) + def test_sum_cumsum(self, df, method): + expected_columns_numeric = Index(["int", "float", "category_int"]) + expected_columns = Index( + ["int", "float", "string", "category_int", "timedelta"] + ) + if method == "cumsum": + # cumsum loses string + expected_columns = Index(["int", "float", "category_int", "timedelta"]) + + self._check(df, method, expected_columns, expected_columns_numeric) + + @pytest.mark.parametrize("method", ["prod", "cumprod"]) + def test_prod_cumprod(self, df, method): + expected_columns = Index(["int", "float", "category_int"]) + expected_columns_numeric = expected_columns + + self._check(df, method, expected_columns, expected_columns_numeric) + + @pytest.mark.parametrize("method", ["cummin", "cummax"]) + def test_cummin_cummax(self, df, method): + # like min, max, but don't include strings + expected_columns = Index( + ["int", "float", "category_int", "datetime", "datetimetz", "timedelta"] + ) + + # GH#15561: numeric_only=False set by default like min/max + expected_columns_numeric = expected_columns + + self._check(df, method, expected_columns, expected_columns_numeric) + + def _check(self, df, method, expected_columns, expected_columns_numeric): + gb = df.groupby("group") + + # object dtypes for transformations are not implemented in Cython and + # have no Python fallback + exception = ( + (NotImplementedError, TypeError) if method.startswith("cum") else TypeError + ) + + if method in ("min", "max", "cummin", "cummax", "cumsum", "cumprod"): + # The methods default to numeric_only=False and raise TypeError + msg = "|".join( + [ + "Categorical is not ordered", + f"Cannot perform {method} with non-ordered Categorical", + re.escape(f"agg function failed [how->{method},dtype->object]"), + # cumsum/cummin/cummax/cumprod + "function is not implemented for this dtype", + f"dtype 'str' does not support operation '{method}'", + ] + ) + with pytest.raises(exception, match=msg): + getattr(gb, method)() + elif method in ("sum", "mean", "median", "prod"): + msg = "|".join( + [ + "category type does not support sum operations", + re.escape(f"agg function failed [how->{method},dtype->object]"), + re.escape(f"agg function failed [how->{method},dtype->string]"), + f"dtype 'str' does not support operation '{method}'", + ] + ) + with pytest.raises(exception, match=msg): + getattr(gb, method)() + else: + result = getattr(gb, method)() + tm.assert_index_equal(result.columns, expected_columns_numeric) + + if method not in ("first", "last"): + msg = "|".join( + [ + "Categorical is not ordered", + "category type does not support", + "function is not implemented for this dtype", + f"Cannot perform {method} with non-ordered Categorical", + re.escape(f"agg function failed [how->{method},dtype->object]"), + re.escape(f"agg function failed [how->{method},dtype->string]"), + f"dtype 'str' does not support operation '{method}'", + ] + ) + with pytest.raises(exception, match=msg): + getattr(gb, method)(numeric_only=False) + else: + result = getattr(gb, method)(numeric_only=False) + tm.assert_index_equal(result.columns, expected_columns) + + +@pytest.mark.parametrize("numeric_only", [True, False, None]) +def test_axis1_numeric_only(request, groupby_func, numeric_only, using_infer_string): + if groupby_func in ("idxmax", "idxmin"): + pytest.skip("idxmax and idx_min tested in test_idxmin_idxmax_axis1") + if groupby_func in ("corrwith", "skew"): + msg = "GH#47723 groupby.corrwith and skew do not correctly implement axis=1" + request.applymarker(pytest.mark.xfail(reason=msg)) + + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 4)), columns=["A", "B", "C", "D"] + ) + df["E"] = "x" + groups = [1, 2, 3, 1, 2, 3, 1, 2, 3, 4] + gb = df.groupby(groups) + method = getattr(gb, groupby_func) + args = get_groupby_method_args(groupby_func, df) + kwargs = {"axis": 1} + if numeric_only is not None: + # when numeric_only is None we don't pass any argument + kwargs["numeric_only"] = numeric_only + + # Functions without numeric_only and axis args + no_args = ("cumprod", "cumsum", "diff", "fillna", "pct_change", "rank", "shift") + # Functions with axis args + has_axis = ( + "cumprod", + "cumsum", + "diff", + "pct_change", + "rank", + "shift", + "cummax", + "cummin", + "idxmin", + "idxmax", + "fillna", + ) + warn_msg = f"DataFrameGroupBy.{groupby_func} with axis=1 is deprecated" + if numeric_only is not None and groupby_func in no_args: + msg = "got an unexpected keyword argument 'numeric_only'" + if groupby_func in ["cumprod", "cumsum"]: + with pytest.raises(TypeError, match=msg): + with tm.assert_produces_warning(FutureWarning, match=warn_msg): + method(*args, **kwargs) + else: + with pytest.raises(TypeError, match=msg): + method(*args, **kwargs) + elif groupby_func not in has_axis: + msg = "got an unexpected keyword argument 'axis'" + with pytest.raises(TypeError, match=msg): + method(*args, **kwargs) + # fillna and shift are successful even on object dtypes + elif (numeric_only is None or not numeric_only) and groupby_func not in ( + "fillna", + "shift", + ): + msgs = ( + # cummax, cummin, rank + "not supported between instances of", + # cumprod + "can't multiply sequence by non-int of type 'float'", + # cumsum, diff, pct_change + "unsupported operand type", + "has no kernel", + "operation 'sub' not supported for dtype 'str' with dtype 'float64'", + ) + if using_infer_string: + pa = pytest.importorskip("pyarrow") + + errs = (TypeError, pa.lib.ArrowNotImplementedError) + else: + errs = TypeError + with pytest.raises(errs, match=f"({'|'.join(msgs)})"): + with tm.assert_produces_warning(FutureWarning, match=warn_msg): + method(*args, **kwargs) + else: + with tm.assert_produces_warning(FutureWarning, match=warn_msg): + result = method(*args, **kwargs) + + df_expected = df.drop(columns="E").T if numeric_only else df.T + expected = getattr(df_expected, groupby_func)(*args).T + if groupby_func == "shift" and not numeric_only: + # shift with axis=1 leaves the leftmost column as numeric + # but transposing for expected gives us object dtype + expected = expected.astype(float) + + tm.assert_equal(result, expected) + + +@pytest.mark.parametrize( + "kernel, has_arg", + [ + ("all", False), + ("any", False), + ("bfill", False), + ("corr", True), + ("corrwith", True), + ("cov", True), + ("cummax", True), + ("cummin", True), + ("cumprod", True), + ("cumsum", True), + ("diff", False), + ("ffill", False), + ("fillna", False), + ("first", True), + ("idxmax", True), + ("idxmin", True), + ("last", True), + ("max", True), + ("mean", True), + ("median", True), + ("min", True), + ("nth", False), + ("nunique", False), + ("pct_change", False), + ("prod", True), + ("quantile", True), + ("sem", True), + ("skew", True), + ("std", True), + ("sum", True), + ("var", True), + ], +) +@pytest.mark.parametrize("numeric_only", [True, False, lib.no_default]) +@pytest.mark.parametrize("keys", [["a1"], ["a1", "a2"]]) +def test_numeric_only(kernel, has_arg, numeric_only, keys): + # GH#46072 + # drops_nuisance: Whether the op drops nuisance columns even when numeric_only=False + # has_arg: Whether the op has a numeric_only arg + df = DataFrame({"a1": [1, 1], "a2": [2, 2], "a3": [5, 6], "b": 2 * [object]}) + + args = get_groupby_method_args(kernel, df) + kwargs = {} if numeric_only is lib.no_default else {"numeric_only": numeric_only} + + gb = df.groupby(keys) + method = getattr(gb, kernel) + if has_arg and numeric_only is True: + # Cases where b does not appear in the result + result = method(*args, **kwargs) + assert "b" not in result.columns + elif ( + # kernels that work on any dtype and have numeric_only arg + kernel in ("first", "last") + or ( + # kernels that work on any dtype and don't have numeric_only arg + kernel in ("any", "all", "bfill", "ffill", "fillna", "nth", "nunique") + and numeric_only is lib.no_default + ) + ): + warn = FutureWarning if kernel == "fillna" else None + msg = "DataFrameGroupBy.fillna is deprecated" + with tm.assert_produces_warning(warn, match=msg): + result = method(*args, **kwargs) + assert "b" in result.columns + elif has_arg: + assert numeric_only is not True + # kernels that are successful on any dtype were above; this will fail + + # object dtypes for transformations are not implemented in Cython and + # have no Python fallback + exception = NotImplementedError if kernel.startswith("cum") else TypeError + + msg = "|".join( + [ + "not allowed for this dtype", + "cannot be performed against 'object' dtypes", + # On PY39 message is "a number"; on PY310 and after is "a real number" + "must be a string or a.* number", + "unsupported operand type", + "function is not implemented for this dtype", + re.escape(f"agg function failed [how->{kernel},dtype->object]"), + ] + ) + if kernel == "quantile": + msg = "dtype 'object' does not support operation 'quantile'" + elif kernel == "idxmin": + msg = "'<' not supported between instances of 'type' and 'type'" + elif kernel == "idxmax": + msg = "'>' not supported between instances of 'type' and 'type'" + with pytest.raises(exception, match=msg): + method(*args, **kwargs) + elif not has_arg and numeric_only is not lib.no_default: + with pytest.raises( + TypeError, match="got an unexpected keyword argument 'numeric_only'" + ): + method(*args, **kwargs) + else: + assert kernel in ("diff", "pct_change") + assert numeric_only is lib.no_default + # Doesn't have numeric_only argument and fails on nuisance columns + with pytest.raises(TypeError, match=r"unsupported operand type"): + method(*args, **kwargs) + + +@pytest.mark.filterwarnings("ignore:Downcasting object dtype arrays:FutureWarning") +@pytest.mark.parametrize("dtype", [bool, int, float, object]) +def test_deprecate_numeric_only_series(dtype, groupby_func, request): + # GH#46560 + grouper = [0, 0, 1] + + ser = Series([1, 0, 0], dtype=dtype) + gb = ser.groupby(grouper) + + if groupby_func == "corrwith": + # corrwith is not implemented on SeriesGroupBy + assert not hasattr(gb, groupby_func) + return + + method = getattr(gb, groupby_func) + + expected_ser = Series([1, 0, 0]) + expected_gb = expected_ser.groupby(grouper) + expected_method = getattr(expected_gb, groupby_func) + + args = get_groupby_method_args(groupby_func, ser) + + fails_on_numeric_object = ( + "corr", + "cov", + "cummax", + "cummin", + "cumprod", + "cumsum", + "quantile", + ) + # ops that give an object result on object input + obj_result = ( + "first", + "last", + "nth", + "bfill", + "ffill", + "shift", + "sum", + "diff", + "pct_change", + "var", + "mean", + "median", + "min", + "max", + "prod", + "skew", + ) + + # Test default behavior; kernels that fail may be enabled in the future but kernels + # that succeed should not be allowed to fail (without deprecation, at least) + if groupby_func in fails_on_numeric_object and dtype is object: + if groupby_func == "quantile": + msg = "dtype 'object' does not support operation 'quantile'" + else: + msg = "is not supported for object dtype" + warn = FutureWarning if groupby_func == "fillna" else None + warn_msg = "DataFrameGroupBy.fillna is deprecated" + with tm.assert_produces_warning(warn, match=warn_msg): + with pytest.raises(TypeError, match=msg): + method(*args) + elif dtype is object: + warn = FutureWarning if groupby_func == "fillna" else None + warn_msg = "SeriesGroupBy.fillna is deprecated" + with tm.assert_produces_warning(warn, match=warn_msg): + result = method(*args) + with tm.assert_produces_warning(warn, match=warn_msg): + expected = expected_method(*args) + if groupby_func in obj_result: + expected = expected.astype(object) + tm.assert_series_equal(result, expected) + + has_numeric_only = ( + "first", + "last", + "max", + "mean", + "median", + "min", + "prod", + "quantile", + "sem", + "skew", + "std", + "sum", + "var", + "cummax", + "cummin", + "cumprod", + "cumsum", + ) + if groupby_func not in has_numeric_only: + msg = "got an unexpected keyword argument 'numeric_only'" + with pytest.raises(TypeError, match=msg): + method(*args, numeric_only=True) + elif dtype is object: + msg = "|".join( + [ + "SeriesGroupBy.sem called with numeric_only=True and dtype object", + "Series.skew does not allow numeric_only=True with non-numeric", + "cum(sum|prod|min|max) is not supported for object dtype", + r"Cannot use numeric_only=True with SeriesGroupBy\..* and non-numeric", + ] + ) + with pytest.raises(TypeError, match=msg): + method(*args, numeric_only=True) + elif dtype == bool and groupby_func == "quantile": + msg = "Allowing bool dtype in SeriesGroupBy.quantile" + with tm.assert_produces_warning(FutureWarning, match=msg): + # GH#51424 + result = method(*args, numeric_only=True) + expected = method(*args, numeric_only=False) + tm.assert_series_equal(result, expected) + else: + result = method(*args, numeric_only=True) + expected = method(*args, numeric_only=False) + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_pipe.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_pipe.py new file mode 100644 index 0000000000000000000000000000000000000000..ee59a93695bcf84bcfcd8f1add8120e2c04004f5 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_pipe.py @@ -0,0 +1,80 @@ +import numpy as np + +import pandas as pd +from pandas import ( + DataFrame, + Index, +) +import pandas._testing as tm + + +def test_pipe(): + # Test the pipe method of DataFrameGroupBy. + # Issue #17871 + + random_state = np.random.default_rng(2) + + df = DataFrame( + { + "A": ["foo", "bar", "foo", "bar", "foo", "bar", "foo", "foo"], + "B": random_state.standard_normal(8), + "C": random_state.standard_normal(8), + } + ) + + def f(dfgb): + return dfgb.B.max() - dfgb.C.min().min() + + def square(srs): + return srs**2 + + # Note that the transformations are + # GroupBy -> Series + # Series -> Series + # This then chains the GroupBy.pipe and the + # NDFrame.pipe methods + result = df.groupby("A").pipe(f).pipe(square) + + index = Index(["bar", "foo"], name="A") + expected = pd.Series([3.749306591013693, 6.717707873081384], name="B", index=index) + + tm.assert_series_equal(expected, result) + + +def test_pipe_args(): + # Test passing args to the pipe method of DataFrameGroupBy. + # Issue #17871 + + df = DataFrame( + { + "group": ["A", "A", "B", "B", "C"], + "x": [1.0, 2.0, 3.0, 2.0, 5.0], + "y": [10.0, 100.0, 1000.0, -100.0, -1000.0], + } + ) + + def f(dfgb, arg1): + filtered = dfgb.filter(lambda grp: grp.y.mean() > arg1, dropna=False) + return filtered.groupby("group") + + def g(dfgb, arg2): + return dfgb.sum() / dfgb.sum().sum() + arg2 + + def h(df, arg3): + return df.x + df.y - arg3 + + result = df.groupby("group").pipe(f, 0).pipe(g, 10).pipe(h, 100) + + # Assert the results here + index = Index(["A", "B"], name="group") + expected = pd.Series([-79.5160891089, -78.4839108911], index=index) + + tm.assert_series_equal(result, expected) + + # test SeriesGroupby.pipe + ser = pd.Series([1, 1, 2, 2, 3, 3]) + result = ser.groupby(ser).pipe(lambda grp: grp.sum() * grp.count()) + + expected = pd.Series([4, 8, 12], index=Index([1, 2, 3], dtype=np.int64)) + + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_raises.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_raises.py new file mode 100644 index 0000000000000000000000000000000000000000..bc39f67829792a5c4e254add7100f306ba19be61 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_raises.py @@ -0,0 +1,757 @@ +# Only tests that raise an error and have no better location should go here. +# Tests for specific groupby methods should go in their respective +# test file. + +import datetime +import re + +import numpy as np +import pytest + +from pandas import ( + Categorical, + DataFrame, + Grouper, + Series, +) +import pandas._testing as tm +from pandas.tests.groupby import get_groupby_method_args + + +@pytest.fixture( + params=[ + "a", + ["a"], + ["a", "b"], + Grouper(key="a"), + lambda x: x % 2, + [0, 0, 0, 1, 2, 2, 2, 3, 3], + np.array([0, 0, 0, 1, 2, 2, 2, 3, 3]), + dict(zip(range(9), [0, 0, 0, 1, 2, 2, 2, 3, 3])), + Series([1, 1, 1, 1, 1, 2, 2, 2, 2]), + [Series([1, 1, 1, 1, 1, 2, 2, 2, 2]), Series([3, 3, 4, 4, 4, 4, 4, 3, 3])], + ] +) +def by(request): + return request.param + + +@pytest.fixture(params=[True, False]) +def groupby_series(request): + return request.param + + +@pytest.fixture +def df_with_string_col(): + df = DataFrame( + { + "a": [1, 1, 1, 1, 1, 2, 2, 2, 2], + "b": [3, 3, 4, 4, 4, 4, 4, 3, 3], + "c": range(9), + "d": list("xyzwtyuio"), + } + ) + return df + + +@pytest.fixture +def df_with_datetime_col(): + df = DataFrame( + { + "a": [1, 1, 1, 1, 1, 2, 2, 2, 2], + "b": [3, 3, 4, 4, 4, 4, 4, 3, 3], + "c": range(9), + "d": datetime.datetime(2005, 1, 1, 10, 30, 23, 540000), + } + ) + return df + + +@pytest.fixture +def df_with_timedelta_col(): + df = DataFrame( + { + "a": [1, 1, 1, 1, 1, 2, 2, 2, 2], + "b": [3, 3, 4, 4, 4, 4, 4, 3, 3], + "c": range(9), + "d": datetime.timedelta(days=1), + } + ) + return df + + +@pytest.fixture +def df_with_cat_col(): + df = DataFrame( + { + "a": [1, 1, 1, 1, 1, 2, 2, 2, 2], + "b": [3, 3, 4, 4, 4, 4, 4, 3, 3], + "c": range(9), + "d": Categorical( + ["a", "a", "a", "a", "b", "b", "b", "b", "c"], + categories=["a", "b", "c", "d"], + ordered=True, + ), + } + ) + return df + + +def _call_and_check(klass, msg, how, gb, groupby_func, args, warn_msg=""): + warn_klass = None if warn_msg == "" else FutureWarning + with tm.assert_produces_warning(warn_klass, match=warn_msg): + if klass is None: + if how == "method": + getattr(gb, groupby_func)(*args) + elif how == "agg": + gb.agg(groupby_func, *args) + else: + gb.transform(groupby_func, *args) + else: + with pytest.raises(klass, match=msg): + if how == "method": + getattr(gb, groupby_func)(*args) + elif how == "agg": + gb.agg(groupby_func, *args) + else: + gb.transform(groupby_func, *args) + + +@pytest.mark.parametrize("how", ["method", "agg", "transform"]) +def test_groupby_raises_string( + how, by, groupby_series, groupby_func, df_with_string_col, using_infer_string +): + df = df_with_string_col + args = get_groupby_method_args(groupby_func, df) + gb = df.groupby(by=by) + + if groupby_series: + gb = gb["d"] + + if groupby_func == "corrwith": + assert not hasattr(gb, "corrwith") + return + + klass, msg = { + "all": (None, ""), + "any": (None, ""), + "bfill": (None, ""), + "corrwith": (TypeError, "Could not convert"), + "count": (None, ""), + "cumcount": (None, ""), + "cummax": ( + (NotImplementedError, TypeError), + "(function|cummax) is not (implemented|supported) for (this|object) dtype", + ), + "cummin": ( + (NotImplementedError, TypeError), + "(function|cummin) is not (implemented|supported) for (this|object) dtype", + ), + "cumprod": ( + (NotImplementedError, TypeError), + "(function|cumprod) is not (implemented|supported) for (this|object) dtype", + ), + "cumsum": ( + (NotImplementedError, TypeError), + "(function|cumsum) is not (implemented|supported) for (this|object) dtype", + ), + "diff": (TypeError, "unsupported operand type"), + "ffill": (None, ""), + "fillna": (None, ""), + "first": (None, ""), + "idxmax": (None, ""), + "idxmin": (None, ""), + "last": (None, ""), + "max": (None, ""), + "mean": ( + TypeError, + re.escape("agg function failed [how->mean,dtype->object]"), + ), + "median": ( + TypeError, + re.escape("agg function failed [how->median,dtype->object]"), + ), + "min": (None, ""), + "ngroup": (None, ""), + "nunique": (None, ""), + "pct_change": (TypeError, "unsupported operand type"), + "prod": ( + TypeError, + re.escape("agg function failed [how->prod,dtype->object]"), + ), + "quantile": (TypeError, "dtype 'object' does not support operation 'quantile'"), + "rank": (None, ""), + "sem": (ValueError, "could not convert string to float"), + "shift": (None, ""), + "size": (None, ""), + "skew": (ValueError, "could not convert string to float"), + "std": (ValueError, "could not convert string to float"), + "sum": (None, ""), + "var": ( + TypeError, + re.escape("agg function failed [how->var,dtype->"), + ), + }[groupby_func] + + if using_infer_string: + if groupby_func in [ + "prod", + "mean", + "median", + "cumsum", + "cumprod", + "std", + "sem", + "var", + "skew", + "quantile", + ]: + msg = f"dtype 'str' does not support operation '{groupby_func}'" + if groupby_func in ["sem", "std", "skew"]: + # The object-dtype raises ValueError when trying to convert to numeric. + klass = TypeError + elif groupby_func == "pct_change" and df["d"].dtype.storage == "pyarrow": + # This doesn't go through EA._groupby_op so the message isn't controlled + # there. + msg = "operation 'truediv' not supported for dtype 'str' with dtype 'str'" + elif groupby_func == "diff" and df["d"].dtype.storage == "pyarrow": + # This doesn't go through EA._groupby_op so the message isn't controlled + # there. + msg = "operation 'sub' not supported for dtype 'str' with dtype 'str'" + + elif groupby_func in ["cummin", "cummax"]: + msg = msg.replace("object", "str") + elif groupby_func == "corrwith": + msg = "Cannot perform reduction 'mean' with string dtype" + + if groupby_func == "fillna": + kind = "Series" if groupby_series else "DataFrame" + warn_msg = f"{kind}GroupBy.fillna is deprecated" + else: + warn_msg = "" + _call_and_check(klass, msg, how, gb, groupby_func, args, warn_msg) + + +@pytest.mark.parametrize("how", ["agg", "transform"]) +def test_groupby_raises_string_udf(how, by, groupby_series, df_with_string_col): + df = df_with_string_col + gb = df.groupby(by=by) + + if groupby_series: + gb = gb["d"] + + def func(x): + raise TypeError("Test error message") + + with pytest.raises(TypeError, match="Test error message"): + getattr(gb, how)(func) + + +@pytest.mark.parametrize("how", ["agg", "transform"]) +@pytest.mark.parametrize("groupby_func_np", [np.sum, np.mean]) +def test_groupby_raises_string_np( + how, + by, + groupby_series, + groupby_func_np, + df_with_string_col, + using_infer_string, +): + # GH#50749 + df = df_with_string_col + gb = df.groupby(by=by) + + if groupby_series: + gb = gb["d"] + + klass, msg = { + np.sum: (None, ""), + np.mean: ( + TypeError, + "agg function failed|Cannot perform reduction 'mean' with string dtype", + ), + }[groupby_func_np] + + if using_infer_string: + if groupby_func_np is np.mean: + klass = TypeError + msg = "dtype 'str' does not support operation 'mean'" + + if groupby_series: + warn_msg = "using SeriesGroupBy.[sum|mean]" + else: + warn_msg = "using DataFrameGroupBy.[sum|mean]" + _call_and_check(klass, msg, how, gb, groupby_func_np, (), warn_msg=warn_msg) + + +@pytest.mark.parametrize("how", ["method", "agg", "transform"]) +def test_groupby_raises_datetime( + how, by, groupby_series, groupby_func, df_with_datetime_col +): + df = df_with_datetime_col + args = get_groupby_method_args(groupby_func, df) + gb = df.groupby(by=by) + + if groupby_series: + gb = gb["d"] + + if groupby_func == "corrwith": + assert not hasattr(gb, "corrwith") + return + + klass, msg = { + "all": (None, ""), + "any": (None, ""), + "bfill": (None, ""), + "corrwith": (TypeError, "cannot perform __mul__ with this index type"), + "count": (None, ""), + "cumcount": (None, ""), + "cummax": (None, ""), + "cummin": (None, ""), + "cumprod": (TypeError, "datetime64 type does not support cumprod operations"), + "cumsum": (TypeError, "datetime64 type does not support cumsum operations"), + "diff": (None, ""), + "ffill": (None, ""), + "fillna": (None, ""), + "first": (None, ""), + "idxmax": (None, ""), + "idxmin": (None, ""), + "last": (None, ""), + "max": (None, ""), + "mean": (None, ""), + "median": (None, ""), + "min": (None, ""), + "ngroup": (None, ""), + "nunique": (None, ""), + "pct_change": (TypeError, "cannot perform __truediv__ with this index type"), + "prod": (TypeError, "datetime64 type does not support prod"), + "quantile": (None, ""), + "rank": (None, ""), + "sem": (None, ""), + "shift": (None, ""), + "size": (None, ""), + "skew": ( + TypeError, + "|".join( + [ + r"dtype datetime64\[ns\] does not support reduction", + "datetime64 type does not support skew operations", + ] + ), + ), + "std": (None, ""), + "sum": (TypeError, "datetime64 type does not support sum operations"), + "var": (TypeError, "datetime64 type does not support var operations"), + }[groupby_func] + + if groupby_func in ["any", "all"]: + warn_msg = f"'{groupby_func}' with datetime64 dtypes is deprecated" + elif groupby_func == "fillna": + kind = "Series" if groupby_series else "DataFrame" + warn_msg = f"{kind}GroupBy.fillna is deprecated" + else: + warn_msg = "" + _call_and_check(klass, msg, how, gb, groupby_func, args, warn_msg=warn_msg) + + +@pytest.mark.parametrize("how", ["agg", "transform"]) +def test_groupby_raises_datetime_udf(how, by, groupby_series, df_with_datetime_col): + df = df_with_datetime_col + gb = df.groupby(by=by) + + if groupby_series: + gb = gb["d"] + + def func(x): + raise TypeError("Test error message") + + with pytest.raises(TypeError, match="Test error message"): + getattr(gb, how)(func) + + +@pytest.mark.parametrize("how", ["agg", "transform"]) +@pytest.mark.parametrize("groupby_func_np", [np.sum, np.mean]) +def test_groupby_raises_datetime_np( + how, by, groupby_series, groupby_func_np, df_with_datetime_col +): + # GH#50749 + df = df_with_datetime_col + gb = df.groupby(by=by) + + if groupby_series: + gb = gb["d"] + + klass, msg = { + np.sum: (TypeError, "datetime64 type does not support sum operations"), + np.mean: (None, ""), + }[groupby_func_np] + + if groupby_series: + warn_msg = "using SeriesGroupBy.[sum|mean]" + else: + warn_msg = "using DataFrameGroupBy.[sum|mean]" + _call_and_check(klass, msg, how, gb, groupby_func_np, (), warn_msg=warn_msg) + + +@pytest.mark.parametrize("func", ["prod", "cumprod", "skew", "var"]) +def test_groupby_raises_timedelta(func, df_with_timedelta_col): + df = df_with_timedelta_col + gb = df.groupby(by="a") + + _call_and_check( + TypeError, + "timedelta64 type does not support .* operations", + "method", + gb, + func, + [], + ) + + +@pytest.mark.parametrize("how", ["method", "agg", "transform"]) +def test_groupby_raises_category( + how, by, groupby_series, groupby_func, using_copy_on_write, df_with_cat_col +): + # GH#50749 + df = df_with_cat_col + args = get_groupby_method_args(groupby_func, df) + gb = df.groupby(by=by) + + if groupby_series: + gb = gb["d"] + + if groupby_func == "corrwith": + assert not hasattr(gb, "corrwith") + return + + klass, msg = { + "all": (None, ""), + "any": (None, ""), + "bfill": (None, ""), + "corrwith": ( + TypeError, + r"unsupported operand type\(s\) for \*: 'Categorical' and 'int'", + ), + "count": (None, ""), + "cumcount": (None, ""), + "cummax": ( + (NotImplementedError, TypeError), + "(category type does not support cummax operations|" + "category dtype not supported|" + "cummax is not supported for category dtype)", + ), + "cummin": ( + (NotImplementedError, TypeError), + "(category type does not support cummin operations|" + "category dtype not supported|" + "cummin is not supported for category dtype)", + ), + "cumprod": ( + (NotImplementedError, TypeError), + "(category type does not support cumprod operations|" + "category dtype not supported|" + "cumprod is not supported for category dtype)", + ), + "cumsum": ( + (NotImplementedError, TypeError), + "(category type does not support cumsum operations|" + "category dtype not supported|" + "cumsum is not supported for category dtype)", + ), + "diff": ( + TypeError, + r"unsupported operand type\(s\) for -: 'Categorical' and 'Categorical'", + ), + "ffill": (None, ""), + "fillna": ( + TypeError, + r"Cannot setitem on a Categorical with a new category \(0\), " + "set the categories first", + ) + if not using_copy_on_write + else (None, ""), # no-op with CoW + "first": (None, ""), + "idxmax": (None, ""), + "idxmin": (None, ""), + "last": (None, ""), + "max": (None, ""), + "mean": ( + TypeError, + "|".join( + [ + "'Categorical' .* does not support reduction 'mean'", + "category dtype does not support aggregation 'mean'", + ] + ), + ), + "median": ( + TypeError, + "|".join( + [ + "'Categorical' .* does not support reduction 'median'", + "category dtype does not support aggregation 'median'", + ] + ), + ), + "min": (None, ""), + "ngroup": (None, ""), + "nunique": (None, ""), + "pct_change": ( + TypeError, + r"unsupported operand type\(s\) for /: 'Categorical' and 'Categorical'", + ), + "prod": (TypeError, "category type does not support prod operations"), + "quantile": (TypeError, "No matching signature found"), + "rank": (None, ""), + "sem": ( + TypeError, + "|".join( + [ + "'Categorical' .* does not support reduction 'sem'", + "category dtype does not support aggregation 'sem'", + ] + ), + ), + "shift": (None, ""), + "size": (None, ""), + "skew": ( + TypeError, + "|".join( + [ + "dtype category does not support reduction 'skew'", + "category type does not support skew operations", + ] + ), + ), + "std": ( + TypeError, + "|".join( + [ + "'Categorical' .* does not support reduction 'std'", + "category dtype does not support aggregation 'std'", + ] + ), + ), + "sum": (TypeError, "category type does not support sum operations"), + "var": ( + TypeError, + "|".join( + [ + "'Categorical' .* does not support reduction 'var'", + "category dtype does not support aggregation 'var'", + ] + ), + ), + }[groupby_func] + + if groupby_func == "fillna": + kind = "Series" if groupby_series else "DataFrame" + warn_msg = f"{kind}GroupBy.fillna is deprecated" + else: + warn_msg = "" + _call_and_check(klass, msg, how, gb, groupby_func, args, warn_msg) + + +@pytest.mark.parametrize("how", ["agg", "transform"]) +def test_groupby_raises_category_udf(how, by, groupby_series, df_with_cat_col): + # GH#50749 + df = df_with_cat_col + gb = df.groupby(by=by) + + if groupby_series: + gb = gb["d"] + + def func(x): + raise TypeError("Test error message") + + with pytest.raises(TypeError, match="Test error message"): + getattr(gb, how)(func) + + +@pytest.mark.parametrize("how", ["agg", "transform"]) +@pytest.mark.parametrize("groupby_func_np", [np.sum, np.mean]) +def test_groupby_raises_category_np( + how, by, groupby_series, groupby_func_np, df_with_cat_col +): + # GH#50749 + df = df_with_cat_col + gb = df.groupby(by=by) + + if groupby_series: + gb = gb["d"] + + klass, msg = { + np.sum: (TypeError, "category type does not support sum operations"), + np.mean: ( + TypeError, + "category dtype does not support aggregation 'mean'", + ), + }[groupby_func_np] + + if groupby_series: + warn_msg = "using SeriesGroupBy.[sum|mean]" + else: + warn_msg = "using DataFrameGroupBy.[sum|mean]" + _call_and_check(klass, msg, how, gb, groupby_func_np, (), warn_msg=warn_msg) + + +@pytest.mark.parametrize("how", ["method", "agg", "transform"]) +def test_groupby_raises_category_on_category( + how, + by, + groupby_series, + groupby_func, + observed, + using_copy_on_write, + df_with_cat_col, +): + # GH#50749 + df = df_with_cat_col + df["a"] = Categorical( + ["a", "a", "a", "a", "b", "b", "b", "b", "c"], + categories=["a", "b", "c", "d"], + ordered=True, + ) + args = get_groupby_method_args(groupby_func, df) + gb = df.groupby(by=by, observed=observed) + + if groupby_series: + gb = gb["d"] + + if groupby_func == "corrwith": + assert not hasattr(gb, "corrwith") + return + + empty_groups = not observed and any(group.empty for group in gb.groups.values()) + if ( + not observed + and how != "transform" + and isinstance(by, list) + and isinstance(by[0], str) + and by == ["a", "b"] + ): + assert not empty_groups + # TODO: empty_groups should be true due to unobserved categorical combinations + empty_groups = True + if how == "transform": + # empty groups will be ignored + empty_groups = False + + klass, msg = { + "all": (None, ""), + "any": (None, ""), + "bfill": (None, ""), + "corrwith": ( + TypeError, + r"unsupported operand type\(s\) for \*: 'Categorical' and 'int'", + ), + "count": (None, ""), + "cumcount": (None, ""), + "cummax": ( + (NotImplementedError, TypeError), + "(cummax is not supported for category dtype|" + "category dtype not supported|" + "category type does not support cummax operations)", + ), + "cummin": ( + (NotImplementedError, TypeError), + "(cummin is not supported for category dtype|" + "category dtype not supported|" + "category type does not support cummin operations)", + ), + "cumprod": ( + (NotImplementedError, TypeError), + "(cumprod is not supported for category dtype|" + "category dtype not supported|" + "category type does not support cumprod operations)", + ), + "cumsum": ( + (NotImplementedError, TypeError), + "(cumsum is not supported for category dtype|" + "category dtype not supported|" + "category type does not support cumsum operations)", + ), + "diff": (TypeError, "unsupported operand type"), + "ffill": (None, ""), + "fillna": ( + TypeError, + r"Cannot setitem on a Categorical with a new category \(0\), " + "set the categories first", + ) + if not using_copy_on_write + else (None, ""), # no-op with CoW + "first": (None, ""), + "idxmax": (ValueError, "empty group due to unobserved categories") + if empty_groups + else (None, ""), + "idxmin": (ValueError, "empty group due to unobserved categories") + if empty_groups + else (None, ""), + "last": (None, ""), + "max": (None, ""), + "mean": (TypeError, "category dtype does not support aggregation 'mean'"), + "median": (TypeError, "category dtype does not support aggregation 'median'"), + "min": (None, ""), + "ngroup": (None, ""), + "nunique": (None, ""), + "pct_change": (TypeError, "unsupported operand type"), + "prod": (TypeError, "category type does not support prod operations"), + "quantile": (TypeError, "No matching signature found"), + "rank": (None, ""), + "sem": ( + TypeError, + "|".join( + [ + "'Categorical' .* does not support reduction 'sem'", + "category dtype does not support aggregation 'sem'", + ] + ), + ), + "shift": (None, ""), + "size": (None, ""), + "skew": ( + TypeError, + "|".join( + [ + "category type does not support skew operations", + "dtype category does not support reduction 'skew'", + ] + ), + ), + "std": ( + TypeError, + "|".join( + [ + "'Categorical' .* does not support reduction 'std'", + "category dtype does not support aggregation 'std'", + ] + ), + ), + "sum": (TypeError, "category type does not support sum operations"), + "var": ( + TypeError, + "|".join( + [ + "'Categorical' .* does not support reduction 'var'", + "category dtype does not support aggregation 'var'", + ] + ), + ), + }[groupby_func] + + if groupby_func == "fillna": + kind = "Series" if groupby_series else "DataFrame" + warn_msg = f"{kind}GroupBy.fillna is deprecated" + else: + warn_msg = "" + _call_and_check(klass, msg, how, gb, groupby_func, args, warn_msg) + + +def test_subsetting_columns_axis_1_raises(): + # GH 35443 + df = DataFrame({"a": [1], "b": [2], "c": [3]}) + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + gb = df.groupby("a", axis=1) + with pytest.raises(ValueError, match="Cannot subset columns when using axis=1"): + gb["b"] diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_reductions.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_reductions.py new file mode 100644 index 0000000000000000000000000000000000000000..f9ef86adc92275842567a537343faa335a8eb59a --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_reductions.py @@ -0,0 +1,1277 @@ +import builtins +import datetime as dt +from string import ascii_lowercase + +import numpy as np +import pytest + +from pandas._libs.tslibs import iNaT + +from pandas.core.dtypes.common import pandas_dtype +from pandas.core.dtypes.missing import na_value_for_dtype + +import pandas as pd +from pandas import ( + DataFrame, + MultiIndex, + Series, + Timestamp, + date_range, + isna, +) +import pandas._testing as tm +from pandas.tests.groupby import get_groupby_method_args +from pandas.util import _test_decorators as td + + +@pytest.mark.parametrize("agg_func", ["any", "all"]) +@pytest.mark.parametrize( + "vals", + [ + ["foo", "bar", "baz"], + ["foo", "", ""], + ["", "", ""], + [1, 2, 3], + [1, 0, 0], + [0, 0, 0], + [1.0, 2.0, 3.0], + [1.0, 0.0, 0.0], + [0.0, 0.0, 0.0], + [True, True, True], + [True, False, False], + [False, False, False], + [np.nan, np.nan, np.nan], + ], +) +def test_groupby_bool_aggs(skipna, agg_func, vals): + df = DataFrame({"key": ["a"] * 3 + ["b"] * 3, "val": vals * 2}) + + # Figure out expectation using Python builtin + exp = getattr(builtins, agg_func)(vals) + + # edge case for missing data with skipna and 'any' + if skipna and all(isna(vals)) and agg_func == "any": + exp = False + + expected = DataFrame( + [exp] * 2, columns=["val"], index=pd.Index(["a", "b"], name="key") + ) + result = getattr(df.groupby("key"), agg_func)(skipna=skipna) + tm.assert_frame_equal(result, expected) + + +def test_any(): + df = DataFrame( + [[1, 2, "foo"], [1, np.nan, "bar"], [3, np.nan, "baz"]], + columns=["A", "B", "C"], + ) + expected = DataFrame( + [[True, True], [False, True]], columns=["B", "C"], index=[1, 3] + ) + expected.index.name = "A" + result = df.groupby("A").any() + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("bool_agg_func", ["any", "all"]) +def test_bool_aggs_dup_column_labels(bool_agg_func): + # GH#21668 + df = DataFrame([[True, True]], columns=["a", "a"]) + grp_by = df.groupby([0]) + result = getattr(grp_by, bool_agg_func)() + + expected = df.set_axis(np.array([0])) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("bool_agg_func", ["any", "all"]) +@pytest.mark.parametrize( + "data", + [ + [False, False, False], + [True, True, True], + [pd.NA, pd.NA, pd.NA], + [False, pd.NA, False], + [True, pd.NA, True], + [True, pd.NA, False], + ], +) +def test_masked_kleene_logic(bool_agg_func, skipna, data): + # GH#37506 + ser = Series(data, dtype="boolean") + + # The result should match aggregating on the whole series. Correctness + # there is verified in test_reductions.py::test_any_all_boolean_kleene_logic + expected_data = getattr(ser, bool_agg_func)(skipna=skipna) + expected = Series(expected_data, index=np.array([0]), dtype="boolean") + + result = ser.groupby([0, 0, 0]).agg(bool_agg_func, skipna=skipna) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "dtype1,dtype2,exp_col1,exp_col2", + [ + ( + "float", + "Float64", + np.array([True], dtype=bool), + pd.array([pd.NA], dtype="boolean"), + ), + ( + "Int64", + "float", + pd.array([pd.NA], dtype="boolean"), + np.array([True], dtype=bool), + ), + ( + "Int64", + "Int64", + pd.array([pd.NA], dtype="boolean"), + pd.array([pd.NA], dtype="boolean"), + ), + ( + "Float64", + "boolean", + pd.array([pd.NA], dtype="boolean"), + pd.array([pd.NA], dtype="boolean"), + ), + ], +) +def test_masked_mixed_types(dtype1, dtype2, exp_col1, exp_col2): + # GH#37506 + data = [1.0, np.nan] + df = DataFrame( + {"col1": pd.array(data, dtype=dtype1), "col2": pd.array(data, dtype=dtype2)} + ) + result = df.groupby([1, 1]).agg("all", skipna=False) + + expected = DataFrame({"col1": exp_col1, "col2": exp_col2}, index=np.array([1])) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("bool_agg_func", ["any", "all"]) +@pytest.mark.parametrize("dtype", ["Int64", "Float64", "boolean"]) +def test_masked_bool_aggs_skipna(bool_agg_func, dtype, skipna, frame_or_series): + # GH#40585 + obj = frame_or_series([pd.NA, 1], dtype=dtype) + expected_res = True + if not skipna and bool_agg_func == "all": + expected_res = pd.NA + expected = frame_or_series([expected_res], index=np.array([1]), dtype="boolean") + + result = obj.groupby([1, 1]).agg(bool_agg_func, skipna=skipna) + tm.assert_equal(result, expected) + + +@pytest.mark.parametrize( + "bool_agg_func,data,expected_res", + [ + ("any", [pd.NA, np.nan], False), + ("any", [pd.NA, 1, np.nan], True), + ("all", [pd.NA, pd.NaT], True), + ("all", [pd.NA, False, pd.NaT], False), + ], +) +def test_object_type_missing_vals(bool_agg_func, data, expected_res, frame_or_series): + # GH#37501 + obj = frame_or_series(data, dtype=object) + result = obj.groupby([1] * len(data)).agg(bool_agg_func) + expected = frame_or_series([expected_res], index=np.array([1]), dtype="bool") + tm.assert_equal(result, expected) + + +@pytest.mark.parametrize("bool_agg_func", ["any", "all"]) +def test_object_NA_raises_with_skipna_false(bool_agg_func): + # GH#37501 + ser = Series([pd.NA], dtype=object) + with pytest.raises(TypeError, match="boolean value of NA is ambiguous"): + ser.groupby([1]).agg(bool_agg_func, skipna=False) + + +@pytest.mark.parametrize("bool_agg_func", ["any", "all"]) +def test_empty(frame_or_series, bool_agg_func): + # GH 45231 + kwargs = {"columns": ["a"]} if frame_or_series is DataFrame else {"name": "a"} + obj = frame_or_series(**kwargs, dtype=object) + result = getattr(obj.groupby(obj.index), bool_agg_func)() + expected = frame_or_series(**kwargs, dtype=bool) + tm.assert_equal(result, expected) + + +@pytest.mark.parametrize("how", ["idxmin", "idxmax"]) +def test_idxmin_idxmax_extremes(how, any_real_numpy_dtype): + # GH#57040 + if any_real_numpy_dtype is int or any_real_numpy_dtype is float: + # No need to test + return + info = np.iinfo if "int" in any_real_numpy_dtype else np.finfo + min_value = info(any_real_numpy_dtype).min + max_value = info(any_real_numpy_dtype).max + df = DataFrame( + {"a": [2, 1, 1, 2], "b": [min_value, max_value, max_value, min_value]}, + dtype=any_real_numpy_dtype, + ) + gb = df.groupby("a") + result = getattr(gb, how)() + expected = DataFrame( + {"b": [1, 0]}, index=pd.Index([1, 2], name="a", dtype=any_real_numpy_dtype) + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("how", ["idxmin", "idxmax"]) +def test_idxmin_idxmax_extremes_skipna(skipna, how, float_numpy_dtype): + # GH#57040 + min_value = np.finfo(float_numpy_dtype).min + max_value = np.finfo(float_numpy_dtype).max + df = DataFrame( + { + "a": Series(np.repeat(range(1, 6), repeats=2), dtype="intp"), + "b": Series( + [ + np.nan, + min_value, + np.nan, + max_value, + min_value, + np.nan, + max_value, + np.nan, + np.nan, + np.nan, + ], + dtype=float_numpy_dtype, + ), + }, + ) + gb = df.groupby("a") + + warn = None if skipna else FutureWarning + msg = f"The behavior of DataFrameGroupBy.{how} with all-NA values" + with tm.assert_produces_warning(warn, match=msg): + result = getattr(gb, how)(skipna=skipna) + if skipna: + values = [1, 3, 4, 6, np.nan] + else: + values = np.nan + expected = DataFrame( + {"b": values}, index=pd.Index(range(1, 6), name="a", dtype="intp") + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "func, values", + [ + ("idxmin", {"c_int": [0, 2], "c_float": [1, 3], "c_date": [1, 2]}), + ("idxmax", {"c_int": [1, 3], "c_float": [0, 2], "c_date": [0, 3]}), + ], +) +@pytest.mark.parametrize("numeric_only", [True, False]) +def test_idxmin_idxmax_returns_int_types(func, values, numeric_only): + # GH 25444 + df = DataFrame( + { + "name": ["A", "A", "B", "B"], + "c_int": [1, 2, 3, 4], + "c_float": [4.02, 3.03, 2.04, 1.05], + "c_date": ["2019", "2018", "2016", "2017"], + } + ) + df["c_date"] = pd.to_datetime(df["c_date"]) + df["c_date_tz"] = df["c_date"].dt.tz_localize("US/Pacific") + df["c_timedelta"] = df["c_date"] - df["c_date"].iloc[0] + df["c_period"] = df["c_date"].dt.to_period("W") + df["c_Integer"] = df["c_int"].astype("Int64") + df["c_Floating"] = df["c_float"].astype("Float64") + + result = getattr(df.groupby("name"), func)(numeric_only=numeric_only) + + expected = DataFrame(values, index=pd.Index(["A", "B"], name="name")) + if numeric_only: + expected = expected.drop(columns=["c_date"]) + else: + expected["c_date_tz"] = expected["c_date"] + expected["c_timedelta"] = expected["c_date"] + expected["c_period"] = expected["c_date"] + expected["c_Integer"] = expected["c_int"] + expected["c_Floating"] = expected["c_float"] + + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "data", + [ + ( + Timestamp("2011-01-15 12:50:28.502376"), + Timestamp("2011-01-20 12:50:28.593448"), + ), + (24650000000000001, 24650000000000002), + ], +) +@pytest.mark.parametrize("method", ["count", "min", "max", "first", "last"]) +def test_groupby_non_arithmetic_agg_int_like_precision(method, data): + # GH#6620, GH#9311 + df = DataFrame({"a": [1, 1], "b": data}) + + grouped = df.groupby("a") + result = getattr(grouped, method)() + if method == "count": + expected_value = 2 + elif method == "first": + expected_value = data[0] + elif method == "last": + expected_value = data[1] + else: + expected_value = getattr(df["b"], method)() + expected = DataFrame({"b": [expected_value]}, index=pd.Index([1], name="a")) + + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("how", ["first", "last"]) +def test_first_last_skipna(any_real_nullable_dtype, sort, skipna, how): + # GH#57019 + na_value = na_value_for_dtype(pandas_dtype(any_real_nullable_dtype)) + df = DataFrame( + { + "a": [2, 1, 1, 2, 3, 3], + "b": [na_value, 3.0, na_value, 4.0, np.nan, np.nan], + "c": [na_value, 3.0, na_value, 4.0, np.nan, np.nan], + }, + dtype=any_real_nullable_dtype, + ) + gb = df.groupby("a", sort=sort) + method = getattr(gb, how) + result = method(skipna=skipna) + + ilocs = { + ("first", True): [3, 1, 4], + ("first", False): [0, 1, 4], + ("last", True): [3, 1, 5], + ("last", False): [3, 2, 5], + }[how, skipna] + expected = df.iloc[ilocs].set_index("a") + if sort: + expected = expected.sort_index() + tm.assert_frame_equal(result, expected) + + +def test_idxmin_idxmax_axis1(): + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 4)), columns=["A", "B", "C", "D"] + ) + df["A"] = [1, 2, 3, 1, 2, 3, 1, 2, 3, 4] + + gb = df.groupby("A") + + warn_msg = "DataFrameGroupBy.idxmax with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=warn_msg): + res = gb.idxmax(axis=1) + + alt = df.iloc[:, 1:].idxmax(axis=1) + indexer = res.index.get_level_values(1) + + tm.assert_series_equal(alt[indexer], res.droplevel("A")) + + df["E"] = date_range("2016-01-01", periods=10) + gb2 = df.groupby("A") + + msg = "'>' not supported between instances of 'Timestamp' and 'float'" + with pytest.raises(TypeError, match=msg): + with tm.assert_produces_warning(FutureWarning, match=warn_msg): + gb2.idxmax(axis=1) + + +def test_groupby_mean_no_overflow(): + # Regression test for (#22487) + df = DataFrame( + { + "user": ["A", "A", "A", "A", "A"], + "connections": [4970, 4749, 4719, 4704, 18446744073699999744], + } + ) + assert df.groupby("user")["connections"].mean()["A"] == 3689348814740003840 + + +def test_mean_on_timedelta(): + # GH 17382 + df = DataFrame({"time": pd.to_timedelta(range(10)), "cat": ["A", "B"] * 5}) + result = df.groupby("cat")["time"].mean() + expected = Series( + pd.to_timedelta([4, 5]), name="time", index=pd.Index(["A", "B"], name="cat") + ) + tm.assert_series_equal(result, expected) + + +def test_cython_median(): + arr = np.random.default_rng(2).standard_normal(1000) + arr[::2] = np.nan + df = DataFrame(arr) + + labels = np.random.default_rng(2).integers(0, 50, size=1000).astype(float) + labels[::17] = np.nan + + result = df.groupby(labels).median() + msg = "using DataFrameGroupBy.median" + with tm.assert_produces_warning(FutureWarning, match=msg): + exp = df.groupby(labels).agg(np.nanmedian) + tm.assert_frame_equal(result, exp) + + df = DataFrame(np.random.default_rng(2).standard_normal((1000, 5))) + msg = "using DataFrameGroupBy.median" + with tm.assert_produces_warning(FutureWarning, match=msg): + rs = df.groupby(labels).agg(np.median) + xp = df.groupby(labels).median() + tm.assert_frame_equal(rs, xp) + + +def test_median_empty_bins(observed): + df = DataFrame(np.random.default_rng(2).integers(0, 44, 500)) + + grps = range(0, 55, 5) + bins = pd.cut(df[0], grps) + + result = df.groupby(bins, observed=observed).median() + expected = df.groupby(bins, observed=observed).agg(lambda x: x.median()) + tm.assert_frame_equal(result, expected) + + +def test_max_min_non_numeric(): + # #2700 + aa = DataFrame({"nn": [11, 11, 22, 22], "ii": [1, 2, 3, 4], "ss": 4 * ["mama"]}) + + result = aa.groupby("nn").max() + assert "ss" in result + + result = aa.groupby("nn").max(numeric_only=False) + assert "ss" in result + + result = aa.groupby("nn").min() + assert "ss" in result + + result = aa.groupby("nn").min(numeric_only=False) + assert "ss" in result + + +def test_max_min_object_multiple_columns(using_array_manager, using_infer_string): + # GH#41111 case where the aggregation is valid for some columns but not + # others; we split object blocks column-wise, consistent with + # DataFrame._reduce + + df = DataFrame( + { + "A": [1, 1, 2, 2, 3], + "B": [1, "foo", 2, "bar", False], + "C": ["a", "b", "c", "d", "e"], + } + ) + df._consolidate_inplace() # should already be consolidate, but double-check + if not using_array_manager: + assert len(df._mgr.blocks) == 3 if using_infer_string else 2 + + gb = df.groupby("A") + + result = gb[["C"]].max() + # "max" is valid for column "C" but not for "B" + ei = pd.Index([1, 2, 3], name="A") + expected = DataFrame({"C": ["b", "d", "e"]}, index=ei) + tm.assert_frame_equal(result, expected) + + result = gb[["C"]].min() + # "min" is valid for column "C" but not for "B" + ei = pd.Index([1, 2, 3], name="A") + expected = DataFrame({"C": ["a", "c", "e"]}, index=ei) + tm.assert_frame_equal(result, expected) + + +def test_min_date_with_nans(): + # GH26321 + dates = pd.to_datetime( + Series(["2019-05-09", "2019-05-09", "2019-05-09"]), format="%Y-%m-%d" + ).dt.date + df = DataFrame({"a": [np.nan, "1", np.nan], "b": [0, 1, 1], "c": dates}) + + result = df.groupby("b", as_index=False)["c"].min()["c"] + expected = pd.to_datetime( + Series(["2019-05-09", "2019-05-09"], name="c"), format="%Y-%m-%d" + ).dt.date + tm.assert_series_equal(result, expected) + + result = df.groupby("b")["c"].min() + expected.index.name = "b" + tm.assert_series_equal(result, expected) + + +def test_max_inat(): + # GH#40767 dont interpret iNaT as NaN + ser = Series([1, iNaT]) + key = np.array([1, 1], dtype=np.int64) + gb = ser.groupby(key) + + result = gb.max(min_count=2) + expected = Series({1: 1}, dtype=np.int64) + tm.assert_series_equal(result, expected, check_exact=True) + + result = gb.min(min_count=2) + expected = Series({1: iNaT}, dtype=np.int64) + tm.assert_series_equal(result, expected, check_exact=True) + + # not enough entries -> gets masked to NaN + result = gb.min(min_count=3) + expected = Series({1: np.nan}) + tm.assert_series_equal(result, expected, check_exact=True) + + +def test_max_inat_not_all_na(): + # GH#40767 dont interpret iNaT as NaN + + # make sure we dont round iNaT+1 to iNaT + ser = Series([1, iNaT, 2, iNaT + 1]) + gb = ser.groupby([1, 2, 3, 3]) + result = gb.min(min_count=2) + + # Note: in converting to float64, the iNaT + 1 maps to iNaT, i.e. is lossy + expected = Series({1: np.nan, 2: np.nan, 3: iNaT + 1}) + expected.index = expected.index.astype(int) + tm.assert_series_equal(result, expected, check_exact=True) + + +@pytest.mark.parametrize("func", ["min", "max"]) +def test_groupby_aggregate_period_column(func): + # GH 31471 + groups = [1, 2] + periods = pd.period_range("2020", periods=2, freq="Y") + df = DataFrame({"a": groups, "b": periods}) + + result = getattr(df.groupby("a")["b"], func)() + idx = pd.Index([1, 2], name="a") + expected = Series(periods, index=idx, name="b") + + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("func", ["min", "max"]) +def test_groupby_aggregate_period_frame(func): + # GH 31471 + groups = [1, 2] + periods = pd.period_range("2020", periods=2, freq="Y") + df = DataFrame({"a": groups, "b": periods}) + + result = getattr(df.groupby("a"), func)() + idx = pd.Index([1, 2], name="a") + expected = DataFrame({"b": periods}, index=idx) + + tm.assert_frame_equal(result, expected) + + +def test_aggregate_numeric_object_dtype(): + # https://github.com/pandas-dev/pandas/issues/39329 + # simplified case: multiple object columns where one is all-NaN + # -> gets split as the all-NaN is inferred as float + df = DataFrame( + {"key": ["A", "A", "B", "B"], "col1": list("abcd"), "col2": [np.nan] * 4}, + ).astype(object) + result = df.groupby("key").min() + expected = ( + DataFrame( + {"key": ["A", "B"], "col1": ["a", "c"], "col2": [np.nan, np.nan]}, + ) + .set_index("key") + .astype(object) + ) + tm.assert_frame_equal(result, expected) + + # same but with numbers + df = DataFrame( + {"key": ["A", "A", "B", "B"], "col1": list("abcd"), "col2": range(4)}, + ).astype(object) + result = df.groupby("key").min() + expected = ( + DataFrame({"key": ["A", "B"], "col1": ["a", "c"], "col2": [0, 2]}) + .set_index("key") + .astype(object) + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("func", ["min", "max"]) +def test_aggregate_categorical_lost_index(func: str): + # GH: 28641 groupby drops index, when grouping over categorical column with min/max + ds = Series(["b"], dtype="category").cat.as_ordered() + df = DataFrame({"A": [1997], "B": ds}) + result = df.groupby("A").agg({"B": func}) + expected = DataFrame({"B": ["b"]}, index=pd.Index([1997], name="A")) + + # ordered categorical dtype should be preserved + expected["B"] = expected["B"].astype(ds.dtype) + + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("dtype", ["Int64", "Int32", "Float64", "Float32", "boolean"]) +def test_groupby_min_max_nullable(dtype): + if dtype == "Int64": + # GH#41743 avoid precision loss + ts = 1618556707013635762 + elif dtype == "boolean": + ts = 0 + else: + ts = 4.0 + + df = DataFrame({"id": [2, 2], "ts": [ts, ts + 1]}) + df["ts"] = df["ts"].astype(dtype) + + gb = df.groupby("id") + + result = gb.min() + expected = df.iloc[:1].set_index("id") + tm.assert_frame_equal(result, expected) + + res_max = gb.max() + expected_max = df.iloc[1:].set_index("id") + tm.assert_frame_equal(res_max, expected_max) + + result2 = gb.min(min_count=3) + expected2 = DataFrame({"ts": [pd.NA]}, index=expected.index, dtype=dtype) + tm.assert_frame_equal(result2, expected2) + + res_max2 = gb.max(min_count=3) + tm.assert_frame_equal(res_max2, expected2) + + # Case with NA values + df2 = DataFrame({"id": [2, 2, 2], "ts": [ts, pd.NA, ts + 1]}) + df2["ts"] = df2["ts"].astype(dtype) + gb2 = df2.groupby("id") + + result3 = gb2.min() + tm.assert_frame_equal(result3, expected) + + res_max3 = gb2.max() + tm.assert_frame_equal(res_max3, expected_max) + + result4 = gb2.min(min_count=100) + tm.assert_frame_equal(result4, expected2) + + res_max4 = gb2.max(min_count=100) + tm.assert_frame_equal(res_max4, expected2) + + +def test_min_max_nullable_uint64_empty_group(): + # don't raise NotImplementedError from libgroupby + cat = pd.Categorical([0] * 10, categories=[0, 1]) + df = DataFrame({"A": cat, "B": pd.array(np.arange(10, dtype=np.uint64))}) + gb = df.groupby("A", observed=False) + + res = gb.min() + + idx = pd.CategoricalIndex([0, 1], dtype=cat.dtype, name="A") + expected = DataFrame({"B": pd.array([0, pd.NA], dtype="UInt64")}, index=idx) + tm.assert_frame_equal(res, expected) + + res = gb.max() + expected.iloc[0, 0] = 9 + tm.assert_frame_equal(res, expected) + + +@pytest.mark.parametrize("func", ["first", "last", "min", "max"]) +def test_groupby_min_max_categorical(func): + # GH: 52151 + df = DataFrame( + { + "col1": pd.Categorical(["A"], categories=list("AB"), ordered=True), + "col2": pd.Categorical([1], categories=[1, 2], ordered=True), + "value": 0.1, + } + ) + result = getattr(df.groupby("col1", observed=False), func)() + + idx = pd.CategoricalIndex(data=["A", "B"], name="col1", ordered=True) + expected = DataFrame( + { + "col2": pd.Categorical([1, None], categories=[1, 2], ordered=True), + "value": [0.1, None], + }, + index=idx, + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("func", ["min", "max"]) +def test_min_empty_string_dtype(func, string_dtype_no_object): + # GH#55619 + dtype = string_dtype_no_object + df = DataFrame({"a": ["a"], "b": "a", "c": "a"}, dtype=dtype).iloc[:0] + result = getattr(df.groupby("a"), func)() + expected = DataFrame( + columns=["b", "c"], dtype=dtype, index=pd.Index([], dtype=dtype, name="a") + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("min_count", [0, 1]) +@pytest.mark.parametrize("test_series", [True, False]) +def test_string_dtype_all_na( + string_dtype_no_object, reduction_func, min_count, test_series +): + # https://github.com/pandas-dev/pandas/issues/60985 + if reduction_func == "corrwith": + # corrwith is deprecated. + return + + dtype = string_dtype_no_object + + if reduction_func in [ + "any", + "all", + "idxmin", + "idxmax", + "mean", + "median", + "std", + "var", + ]: + kwargs = {} + elif reduction_func in ["kurt"]: + kwargs = {"min_count": min_count} + elif reduction_func in ["count", "nunique", "quantile", "sem", "size"]: + kwargs = {} + else: + kwargs = {"min_count": min_count} + + expected_dtype, expected_value = dtype, pd.NA + if reduction_func in ["all", "any"]: + expected_dtype = "bool" + # TODO: For skipna=False, bool(pd.NA) raises; should groupby? + expected_value = False if reduction_func == "any" else True + elif reduction_func in ["count", "nunique", "size"]: + # TODO: Should be more consistent - return Int64 when dtype.na_value is pd.NA? + if ( + test_series + and reduction_func == "size" + and dtype.storage == "pyarrow" + and dtype.na_value is pd.NA + ): + expected_dtype = "Int64" + else: + expected_dtype = "int64" + expected_value = 1 if reduction_func == "size" else 0 + elif reduction_func in ["idxmin", "idxmax"]: + expected_dtype, expected_value = "float64", np.nan + elif min_count > 0: + expected_value = pd.NA + elif reduction_func == "sum": + # https://github.com/pandas-dev/pandas/pull/60936 + expected_value = "" + + df = DataFrame({"a": ["x"], "b": [pd.NA]}, dtype=dtype) + obj = df["b"] if test_series else df + args = get_groupby_method_args(reduction_func, obj) + gb = obj.groupby(df["a"]) + method = getattr(gb, reduction_func) + + if reduction_func in [ + "mean", + "median", + "kurt", + "prod", + "quantile", + "sem", + "skew", + "std", + "var", + ]: + msg = f"dtype '{dtype}' does not support operation '{reduction_func}'" + with pytest.raises(TypeError, match=msg): + method(*args, **kwargs) + return + + result = method(*args, **kwargs) + index = pd.Index(["x"], name="a", dtype=dtype) + if test_series or reduction_func == "size": + name = None if not test_series and reduction_func == "size" else "b" + expected = Series(expected_value, index=index, dtype=expected_dtype, name=name) + else: + expected = DataFrame({"b": expected_value}, index=index, dtype=expected_dtype) + tm.assert_equal(result, expected) + + +@pytest.mark.parametrize("min_count", [0, 1]) +def test_string_dtype_empty_sum(string_dtype_no_object, min_count): + # https://github.com/pandas-dev/pandas/issues/60229 + dtype = string_dtype_no_object + df = DataFrame({"a": ["x"], "b": [pd.NA]}, dtype=dtype) + gb = df.groupby("a") + result = gb.sum(min_count=min_count) + value = "" if min_count == 0 else pd.NA + expected = DataFrame( + {"b": value}, index=pd.Index(["x"], name="a", dtype=dtype), dtype=dtype + ) + tm.assert_frame_equal(result, expected) + + +def test_max_nan_bug(): + df = DataFrame( + { + "Unnamed: 0": ["-04-23", "-05-06", "-05-07"], + "Date": [ + "2013-04-23 00:00:00", + "2013-05-06 00:00:00", + "2013-05-07 00:00:00", + ], + "app": Series([np.nan, np.nan, "OE"]), + "File": ["log080001.log", "log.log", "xlsx"], + } + ) + gb = df.groupby("Date") + r = gb[["File"]].max() + e = gb["File"].max().to_frame() + tm.assert_frame_equal(r, e) + assert not r["File"].isna().any() + + +@pytest.mark.slow +@pytest.mark.parametrize("sort", [False, True]) +@pytest.mark.parametrize("dropna", [False, True]) +@pytest.mark.parametrize("as_index", [True, False]) +@pytest.mark.parametrize("with_nan", [True, False]) +@pytest.mark.parametrize("keys", [["joe"], ["joe", "jim"]]) +def test_series_groupby_nunique(sort, dropna, as_index, with_nan, keys): + n = 100 + m = 10 + days = date_range("2015-08-23", periods=10) + df = DataFrame( + { + "jim": np.random.default_rng(2).choice(list(ascii_lowercase), n), + "joe": np.random.default_rng(2).choice(days, n), + "julie": np.random.default_rng(2).integers(0, m, n), + } + ) + if with_nan: + df = df.astype({"julie": float}) # Explicit cast to avoid implicit cast below + df.loc[1::17, "jim"] = None + df.loc[3::37, "joe"] = None + df.loc[7::19, "julie"] = None + df.loc[8::19, "julie"] = None + df.loc[9::19, "julie"] = None + original_df = df.copy() + gr = df.groupby(keys, as_index=as_index, sort=sort) + left = gr["julie"].nunique(dropna=dropna) + + gr = df.groupby(keys, as_index=as_index, sort=sort) + right = gr["julie"].apply(Series.nunique, dropna=dropna) + if not as_index: + right = right.reset_index(drop=True) + + if as_index: + tm.assert_series_equal(left, right, check_names=False) + else: + tm.assert_frame_equal(left, right, check_names=False) + tm.assert_frame_equal(df, original_df) + + +def test_nunique(): + df = DataFrame({"A": list("abbacc"), "B": list("abxacc"), "C": list("abbacx")}) + + expected = DataFrame({"A": list("abc"), "B": [1, 2, 1], "C": [1, 1, 2]}) + result = df.groupby("A", as_index=False).nunique() + tm.assert_frame_equal(result, expected) + + # as_index + expected.index = list("abc") + expected.index.name = "A" + expected = expected.drop(columns="A") + result = df.groupby("A").nunique() + tm.assert_frame_equal(result, expected) + + # with na + result = df.replace({"x": None}).groupby("A").nunique(dropna=False) + tm.assert_frame_equal(result, expected) + + # dropna + expected = DataFrame({"B": [1] * 3, "C": [1] * 3}, index=list("abc")) + expected.index.name = "A" + result = df.replace({"x": None}).groupby("A").nunique() + tm.assert_frame_equal(result, expected) + + +def test_nunique_with_object(): + # GH 11077 + data = DataFrame( + [ + [100, 1, "Alice"], + [200, 2, "Bob"], + [300, 3, "Charlie"], + [-400, 4, "Dan"], + [500, 5, "Edith"], + ], + columns=["amount", "id", "name"], + ) + + result = data.groupby(["id", "amount"])["name"].nunique() + index = MultiIndex.from_arrays([data.id, data.amount]) + expected = Series([1] * 5, name="name", index=index) + tm.assert_series_equal(result, expected) + + +def test_nunique_with_empty_series(): + # GH 12553 + data = Series(name="name", dtype=object) + result = data.groupby(level=0).nunique() + expected = Series(name="name", dtype="int64") + tm.assert_series_equal(result, expected) + + +def test_nunique_with_timegrouper(): + # GH 13453 + test = DataFrame( + { + "time": [ + Timestamp("2016-06-28 09:35:35"), + Timestamp("2016-06-28 16:09:30"), + Timestamp("2016-06-28 16:46:28"), + ], + "data": ["1", "2", "3"], + } + ).set_index("time") + result = test.groupby(pd.Grouper(freq="h"))["data"].nunique() + expected = test.groupby(pd.Grouper(freq="h"))["data"].apply(Series.nunique) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "key, data, dropna, expected", + [ + ( + ["x", "x", "x"], + [Timestamp("2019-01-01"), pd.NaT, Timestamp("2019-01-01")], + True, + Series([1], index=pd.Index(["x"], name="key"), name="data"), + ), + ( + ["x", "x", "x"], + [dt.date(2019, 1, 1), pd.NaT, dt.date(2019, 1, 1)], + True, + Series([1], index=pd.Index(["x"], name="key"), name="data"), + ), + ( + ["x", "x", "x", "y", "y"], + [ + dt.date(2019, 1, 1), + pd.NaT, + dt.date(2019, 1, 1), + pd.NaT, + dt.date(2019, 1, 1), + ], + False, + Series([2, 2], index=pd.Index(["x", "y"], name="key"), name="data"), + ), + ( + ["x", "x", "x", "x", "y"], + [ + dt.date(2019, 1, 1), + pd.NaT, + dt.date(2019, 1, 1), + pd.NaT, + dt.date(2019, 1, 1), + ], + False, + Series([2, 1], index=pd.Index(["x", "y"], name="key"), name="data"), + ), + ], +) +def test_nunique_with_NaT(key, data, dropna, expected): + # GH 27951 + df = DataFrame({"key": key, "data": data}) + result = df.groupby(["key"])["data"].nunique(dropna=dropna) + tm.assert_series_equal(result, expected) + + +def test_nunique_preserves_column_level_names(): + # GH 23222 + test = DataFrame([1, 2, 2], columns=pd.Index(["A"], name="level_0")) + result = test.groupby([0, 0, 0]).nunique() + expected = DataFrame([2], index=np.array([0]), columns=test.columns) + tm.assert_frame_equal(result, expected) + + +def test_nunique_transform_with_datetime(): + # GH 35109 - transform with nunique on datetimes results in integers + df = DataFrame(date_range("2008-12-31", "2009-01-02"), columns=["date"]) + result = df.groupby([0, 0, 1])["date"].transform("nunique") + expected = Series([2, 2, 1], name="date") + tm.assert_series_equal(result, expected) + + +def test_empty_categorical(observed): + # GH#21334 + cat = Series([1]).astype("category") + ser = cat[:0] + gb = ser.groupby(ser, observed=observed) + result = gb.nunique() + if observed: + expected = Series([], index=cat[:0], dtype="int64") + else: + expected = Series([0], index=cat, dtype="int64") + tm.assert_series_equal(result, expected) + + +def test_intercept_builtin_sum(): + s = Series([1.0, 2.0, np.nan, 3.0]) + grouped = s.groupby([0, 1, 2, 2]) + + msg = "using SeriesGroupBy.sum" + with tm.assert_produces_warning(FutureWarning, match=msg): + # GH#53425 + result = grouped.agg(builtins.sum) + msg = "using np.sum" + with tm.assert_produces_warning(FutureWarning, match=msg): + # GH#53425 + result2 = grouped.apply(builtins.sum) + expected = grouped.sum() + tm.assert_series_equal(result, expected) + tm.assert_series_equal(result2, expected) + + +@pytest.mark.parametrize("min_count", [0, 10]) +def test_groupby_sum_mincount_boolean(min_count): + b = True + a = False + na = np.nan + dfg = pd.array([b, b, na, na, a, a, b], dtype="boolean") + + df = DataFrame({"A": [1, 1, 2, 2, 3, 3, 1], "B": dfg}) + result = df.groupby("A").sum(min_count=min_count) + if min_count == 0: + expected = DataFrame( + {"B": pd.array([3, 0, 0], dtype="Int64")}, + index=pd.Index([1, 2, 3], name="A"), + ) + tm.assert_frame_equal(result, expected) + else: + expected = DataFrame( + {"B": pd.array([pd.NA] * 3, dtype="Int64")}, + index=pd.Index([1, 2, 3], name="A"), + ) + tm.assert_frame_equal(result, expected) + + +def test_groupby_sum_below_mincount_nullable_integer(): + # https://github.com/pandas-dev/pandas/issues/32861 + df = DataFrame({"a": [0, 1, 2], "b": [0, 1, 2], "c": [0, 1, 2]}, dtype="Int64") + grouped = df.groupby("a") + idx = pd.Index([0, 1, 2], name="a", dtype="Int64") + + result = grouped["b"].sum(min_count=2) + expected = Series([pd.NA] * 3, dtype="Int64", index=idx, name="b") + tm.assert_series_equal(result, expected) + + result = grouped.sum(min_count=2) + expected = DataFrame({"b": [pd.NA] * 3, "c": [pd.NA] * 3}, dtype="Int64", index=idx) + tm.assert_frame_equal(result, expected) + + +def test_groupby_sum_timedelta_with_nat(): + # GH#42659 + df = DataFrame( + { + "a": [1, 1, 2, 2], + "b": [pd.Timedelta("1d"), pd.Timedelta("2d"), pd.Timedelta("3d"), pd.NaT], + } + ) + td3 = pd.Timedelta(days=3) + + gb = df.groupby("a") + + res = gb.sum() + expected = DataFrame({"b": [td3, td3]}, index=pd.Index([1, 2], name="a")) + tm.assert_frame_equal(res, expected) + + res = gb["b"].sum() + tm.assert_series_equal(res, expected["b"]) + + res = gb["b"].sum(min_count=2) + expected = Series([td3, pd.NaT], dtype="m8[ns]", name="b", index=expected.index) + tm.assert_series_equal(res, expected) + + +@pytest.mark.parametrize( + "dtype", ["int8", "int16", "int32", "int64", "float32", "float64", "uint64"] +) +@pytest.mark.parametrize( + "method,data", + [ + ("first", {"df": [{"a": 1, "b": 1}, {"a": 2, "b": 3}]}), + ("last", {"df": [{"a": 1, "b": 2}, {"a": 2, "b": 4}]}), + ("min", {"df": [{"a": 1, "b": 1}, {"a": 2, "b": 3}]}), + ("max", {"df": [{"a": 1, "b": 2}, {"a": 2, "b": 4}]}), + ("count", {"df": [{"a": 1, "b": 2}, {"a": 2, "b": 2}], "out_type": "int64"}), + ], +) +def test_groupby_non_arithmetic_agg_types(dtype, method, data): + # GH9311, GH6620 + df = DataFrame( + [{"a": 1, "b": 1}, {"a": 1, "b": 2}, {"a": 2, "b": 3}, {"a": 2, "b": 4}] + ) + + df["b"] = df.b.astype(dtype) + + if "args" not in data: + data["args"] = [] + + if "out_type" in data: + out_type = data["out_type"] + else: + out_type = dtype + + exp = data["df"] + df_out = DataFrame(exp) + + df_out["b"] = df_out.b.astype(out_type) + df_out.set_index("a", inplace=True) + + grpd = df.groupby("a") + t = getattr(grpd, method)(*data["args"]) + tm.assert_frame_equal(t, df_out) + + +def scipy_sem(*args, **kwargs): + from scipy.stats import sem + + return sem(*args, ddof=1, **kwargs) + + +@pytest.mark.parametrize( + "op,targop", + [ + ("mean", np.mean), + ("median", np.median), + ("std", np.std), + ("var", np.var), + ("sum", np.sum), + ("prod", np.prod), + ("min", np.min), + ("max", np.max), + ("first", lambda x: x.iloc[0]), + ("last", lambda x: x.iloc[-1]), + ("count", np.size), + pytest.param("sem", scipy_sem, marks=td.skip_if_no("scipy")), + ], +) +def test_ops_general(op, targop): + df = DataFrame(np.random.default_rng(2).standard_normal(1000)) + labels = np.random.default_rng(2).integers(0, 50, size=1000).astype(float) + + result = getattr(df.groupby(labels), op)() + warn = None if op in ("first", "last", "count", "sem") else FutureWarning + msg = f"using DataFrameGroupBy.{op}" + with tm.assert_produces_warning(warn, match=msg): + expected = df.groupby(labels).agg(targop) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "values", + [ + { + "a": [1, 1, 1, 2, 2, 2, 3, 3, 3], + "b": [1, pd.NA, 2, 1, pd.NA, 2, 1, pd.NA, 2], + }, + {"a": [1, 1, 2, 2, 3, 3], "b": [1, 2, 1, 2, 1, 2]}, + ], +) +@pytest.mark.parametrize("function", ["mean", "median", "var"]) +def test_apply_to_nullable_integer_returns_float(values, function): + # https://github.com/pandas-dev/pandas/issues/32219 + output = 0.5 if function == "var" else 1.5 + arr = np.array([output] * 3, dtype=float) + idx = pd.Index([1, 2, 3], name="a", dtype="Int64") + expected = DataFrame({"b": arr}, index=idx).astype("Float64") + + groups = DataFrame(values, dtype="Int64").groupby("a") + + result = getattr(groups, function)() + tm.assert_frame_equal(result, expected) + + result = groups.agg(function) + tm.assert_frame_equal(result, expected) + + result = groups.agg([function]) + expected.columns = MultiIndex.from_tuples([("b", function)]) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "op", + [ + "sum", + "prod", + "min", + "max", + "median", + "mean", + "skew", + "std", + "var", + "sem", + ], +) +@pytest.mark.parametrize("axis", [0, 1]) +@pytest.mark.parametrize("skipna", [True, False]) +@pytest.mark.parametrize("sort", [True, False]) +def test_regression_allowlist_methods(op, axis, skipna, sort): + # GH6944 + # GH 17537 + # explicitly test the allowlist methods + raw_frame = DataFrame([0]) + if axis == 0: + frame = raw_frame + msg = "The 'axis' keyword in DataFrame.groupby is deprecated and will be" + else: + frame = raw_frame.T + msg = "DataFrame.groupby with axis=1 is deprecated" + + with tm.assert_produces_warning(FutureWarning, match=msg): + grouped = frame.groupby(level=0, axis=axis, sort=sort) + + if op == "skew": + # skew has skipna + result = getattr(grouped, op)(skipna=skipna) + expected = frame.groupby(level=0).apply( + lambda h: getattr(h, op)(axis=axis, skipna=skipna) + ) + if sort: + expected = expected.sort_index(axis=axis) + tm.assert_frame_equal(result, expected) + else: + result = getattr(grouped, op)() + expected = frame.groupby(level=0).apply(lambda h: getattr(h, op)(axis=axis)) + if sort: + expected = expected.sort_index(axis=axis) + tm.assert_frame_equal(result, expected) + + +def test_groupby_prod_with_int64_dtype(): + # GH#46573 + data = [ + [1, 11], + [1, 41], + [1, 17], + [1, 37], + [1, 7], + [1, 29], + [1, 31], + [1, 2], + [1, 3], + [1, 43], + [1, 5], + [1, 47], + [1, 19], + [1, 88], + ] + df = DataFrame(data, columns=["A", "B"], dtype="int64") + result = df.groupby(["A"]).prod().reset_index() + expected = DataFrame({"A": [1], "B": [180970905912331920]}, dtype="int64") + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_timegrouper.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_timegrouper.py new file mode 100644 index 0000000000000000000000000000000000000000..0dc2e84c559532e73fc18fa389614ca988fd4f17 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/test_timegrouper.py @@ -0,0 +1,965 @@ +""" +test with the TimeGrouper / grouping with datetimes +""" +from datetime import ( + datetime, + timedelta, +) + +import numpy as np +import pytest +import pytz + +import pandas as pd +from pandas import ( + DataFrame, + DatetimeIndex, + Index, + MultiIndex, + Series, + Timestamp, + date_range, + offsets, +) +import pandas._testing as tm +from pandas.core.groupby.grouper import Grouper +from pandas.core.groupby.ops import BinGrouper + + +@pytest.fixture +def frame_for_truncated_bingrouper(): + """ + DataFrame used by groupby_with_truncated_bingrouper, made into + a separate fixture for easier reuse in + test_groupby_apply_timegrouper_with_nat_apply_squeeze + """ + df = DataFrame( + { + "Quantity": [18, 3, 5, 1, 9, 3], + "Date": [ + Timestamp(2013, 9, 1, 13, 0), + Timestamp(2013, 9, 1, 13, 5), + Timestamp(2013, 10, 1, 20, 0), + Timestamp(2013, 10, 3, 10, 0), + pd.NaT, + Timestamp(2013, 9, 2, 14, 0), + ], + } + ) + return df + + +@pytest.fixture +def groupby_with_truncated_bingrouper(frame_for_truncated_bingrouper): + """ + GroupBy object such that gb._grouper is a BinGrouper and + len(gb._grouper.result_index) < len(gb._grouper.group_keys_seq) + + Aggregations on this groupby should have + + dti = date_range("2013-09-01", "2013-10-01", freq="5D", name="Date") + + As either the index or an index level. + """ + df = frame_for_truncated_bingrouper + + tdg = Grouper(key="Date", freq="5D") + gb = df.groupby(tdg) + + # check we're testing the case we're interested in + assert len(gb._grouper.result_index) != len(gb._grouper.group_keys_seq) + + return gb + + +class TestGroupBy: + def test_groupby_with_timegrouper(self, using_infer_string): + # GH 4161 + # TimeGrouper requires a sorted index + # also verifies that the resultant index has the correct name + df_original = DataFrame( + { + "Buyer": "Carl Carl Carl Carl Joe Carl".split(), + "Quantity": [18, 3, 5, 1, 9, 3], + "Date": [ + datetime(2013, 9, 1, 13, 0), + datetime(2013, 9, 1, 13, 5), + datetime(2013, 10, 1, 20, 0), + datetime(2013, 10, 3, 10, 0), + datetime(2013, 12, 2, 12, 0), + datetime(2013, 9, 2, 14, 0), + ], + } + ) + + # GH 6908 change target column's order + df_reordered = df_original.sort_values(by="Quantity") + + for df in [df_original, df_reordered]: + df = df.set_index(["Date"]) + + exp_dti = date_range( + "20130901", + "20131205", + freq="5D", + name="Date", + inclusive="left", + unit=df.index.unit, + ) + expected = DataFrame( + {"Buyer": "" if using_infer_string else 0, "Quantity": 0}, + index=exp_dti, + ) + # Cast to object to avoid implicit cast when setting entry to "CarlCarlCarl" + expected = expected.astype({"Buyer": object}) + if using_infer_string: + expected = expected.astype({"Buyer": "str"}) + expected.iloc[0, 0] = "CarlCarlCarl" + expected.iloc[6, 0] = "CarlCarl" + expected.iloc[18, 0] = "Joe" + expected.iloc[[0, 6, 18], 1] = np.array([24, 6, 9], dtype="int64") + + result1 = df.resample("5D").sum() + tm.assert_frame_equal(result1, expected) + + df_sorted = df.sort_index() + result2 = df_sorted.groupby(Grouper(freq="5D")).sum() + tm.assert_frame_equal(result2, expected) + + result3 = df.groupby(Grouper(freq="5D")).sum() + tm.assert_frame_equal(result3, expected) + + @pytest.mark.parametrize("should_sort", [True, False]) + def test_groupby_with_timegrouper_methods(self, should_sort): + # GH 3881 + # make sure API of timegrouper conforms + + df = DataFrame( + { + "Branch": "A A A A A B".split(), + "Buyer": "Carl Mark Carl Joe Joe Carl".split(), + "Quantity": [1, 3, 5, 8, 9, 3], + "Date": [ + datetime(2013, 1, 1, 13, 0), + datetime(2013, 1, 1, 13, 5), + datetime(2013, 10, 1, 20, 0), + datetime(2013, 10, 2, 10, 0), + datetime(2013, 12, 2, 12, 0), + datetime(2013, 12, 2, 14, 0), + ], + } + ) + + if should_sort: + df = df.sort_values(by="Quantity", ascending=False) + + df = df.set_index("Date", drop=False) + g = df.groupby(Grouper(freq="6ME")) + assert g.group_keys + + assert isinstance(g._grouper, BinGrouper) + groups = g.groups + assert isinstance(groups, dict) + assert len(groups) == 3 + + def test_timegrouper_with_reg_groups(self): + # GH 3794 + # allow combination of timegrouper/reg groups + + df_original = DataFrame( + { + "Branch": "A A A A A A A B".split(), + "Buyer": "Carl Mark Carl Carl Joe Joe Joe Carl".split(), + "Quantity": [1, 3, 5, 1, 8, 1, 9, 3], + "Date": [ + datetime(2013, 1, 1, 13, 0), + datetime(2013, 1, 1, 13, 5), + datetime(2013, 10, 1, 20, 0), + datetime(2013, 10, 2, 10, 0), + datetime(2013, 10, 1, 20, 0), + datetime(2013, 10, 2, 10, 0), + datetime(2013, 12, 2, 12, 0), + datetime(2013, 12, 2, 14, 0), + ], + } + ).set_index("Date") + + df_sorted = df_original.sort_values(by="Quantity", ascending=False) + + for df in [df_original, df_sorted]: + expected = DataFrame( + { + "Buyer": "Carl Joe Mark".split(), + "Quantity": [10, 18, 3], + "Date": [ + datetime(2013, 12, 31, 0, 0), + datetime(2013, 12, 31, 0, 0), + datetime(2013, 12, 31, 0, 0), + ], + } + ).set_index(["Date", "Buyer"]) + + msg = "The default value of numeric_only" + result = df.groupby([Grouper(freq="YE"), "Buyer"]).sum(numeric_only=True) + tm.assert_frame_equal(result, expected) + + expected = DataFrame( + { + "Buyer": "Carl Mark Carl Joe".split(), + "Quantity": [1, 3, 9, 18], + "Date": [ + datetime(2013, 1, 1, 0, 0), + datetime(2013, 1, 1, 0, 0), + datetime(2013, 7, 1, 0, 0), + datetime(2013, 7, 1, 0, 0), + ], + } + ).set_index(["Date", "Buyer"]) + result = df.groupby([Grouper(freq="6MS"), "Buyer"]).sum(numeric_only=True) + tm.assert_frame_equal(result, expected) + + df_original = DataFrame( + { + "Branch": "A A A A A A A B".split(), + "Buyer": "Carl Mark Carl Carl Joe Joe Joe Carl".split(), + "Quantity": [1, 3, 5, 1, 8, 1, 9, 3], + "Date": [ + datetime(2013, 10, 1, 13, 0), + datetime(2013, 10, 1, 13, 5), + datetime(2013, 10, 1, 20, 0), + datetime(2013, 10, 2, 10, 0), + datetime(2013, 10, 1, 20, 0), + datetime(2013, 10, 2, 10, 0), + datetime(2013, 10, 2, 12, 0), + datetime(2013, 10, 2, 14, 0), + ], + } + ).set_index("Date") + + df_sorted = df_original.sort_values(by="Quantity", ascending=False) + for df in [df_original, df_sorted]: + expected = DataFrame( + { + "Buyer": "Carl Joe Mark Carl Joe".split(), + "Quantity": [6, 8, 3, 4, 10], + "Date": [ + datetime(2013, 10, 1, 0, 0), + datetime(2013, 10, 1, 0, 0), + datetime(2013, 10, 1, 0, 0), + datetime(2013, 10, 2, 0, 0), + datetime(2013, 10, 2, 0, 0), + ], + } + ).set_index(["Date", "Buyer"]) + + result = df.groupby([Grouper(freq="1D"), "Buyer"]).sum(numeric_only=True) + tm.assert_frame_equal(result, expected) + + result = df.groupby([Grouper(freq="1ME"), "Buyer"]).sum(numeric_only=True) + expected = DataFrame( + { + "Buyer": "Carl Joe Mark".split(), + "Quantity": [10, 18, 3], + "Date": [ + datetime(2013, 10, 31, 0, 0), + datetime(2013, 10, 31, 0, 0), + datetime(2013, 10, 31, 0, 0), + ], + } + ).set_index(["Date", "Buyer"]) + tm.assert_frame_equal(result, expected) + + # passing the name + df = df.reset_index() + result = df.groupby([Grouper(freq="1ME", key="Date"), "Buyer"]).sum( + numeric_only=True + ) + tm.assert_frame_equal(result, expected) + + with pytest.raises(KeyError, match="'The grouper name foo is not found'"): + df.groupby([Grouper(freq="1ME", key="foo"), "Buyer"]).sum() + + # passing the level + df = df.set_index("Date") + result = df.groupby([Grouper(freq="1ME", level="Date"), "Buyer"]).sum( + numeric_only=True + ) + tm.assert_frame_equal(result, expected) + result = df.groupby([Grouper(freq="1ME", level=0), "Buyer"]).sum( + numeric_only=True + ) + tm.assert_frame_equal(result, expected) + + with pytest.raises(ValueError, match="The level foo is not valid"): + df.groupby([Grouper(freq="1ME", level="foo"), "Buyer"]).sum() + + # multi names + df = df.copy() + df["Date"] = df.index + offsets.MonthEnd(2) + result = df.groupby([Grouper(freq="1ME", key="Date"), "Buyer"]).sum( + numeric_only=True + ) + expected = DataFrame( + { + "Buyer": "Carl Joe Mark".split(), + "Quantity": [10, 18, 3], + "Date": [ + datetime(2013, 11, 30, 0, 0), + datetime(2013, 11, 30, 0, 0), + datetime(2013, 11, 30, 0, 0), + ], + } + ).set_index(["Date", "Buyer"]) + tm.assert_frame_equal(result, expected) + + # error as we have both a level and a name! + msg = "The Grouper cannot specify both a key and a level!" + with pytest.raises(ValueError, match=msg): + df.groupby( + [Grouper(freq="1ME", key="Date", level="Date"), "Buyer"] + ).sum() + + # single groupers + expected = DataFrame( + [[31]], + columns=["Quantity"], + index=DatetimeIndex( + [datetime(2013, 10, 31, 0, 0)], freq=offsets.MonthEnd(), name="Date" + ), + ) + result = df.groupby(Grouper(freq="1ME")).sum(numeric_only=True) + tm.assert_frame_equal(result, expected) + + result = df.groupby([Grouper(freq="1ME")]).sum(numeric_only=True) + tm.assert_frame_equal(result, expected) + + expected.index = expected.index.shift(1) + assert expected.index.freq == offsets.MonthEnd() + result = df.groupby(Grouper(freq="1ME", key="Date")).sum(numeric_only=True) + tm.assert_frame_equal(result, expected) + + result = df.groupby([Grouper(freq="1ME", key="Date")]).sum( + numeric_only=True + ) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("freq", ["D", "ME", "YE", "QE-APR"]) + def test_timegrouper_with_reg_groups_freq(self, freq): + # GH 6764 multiple grouping with/without sort + df = DataFrame( + { + "date": pd.to_datetime( + [ + "20121002", + "20121007", + "20130130", + "20130202", + "20130305", + "20121002", + "20121207", + "20130130", + "20130202", + "20130305", + "20130202", + "20130305", + ] + ), + "user_id": [1, 1, 1, 1, 1, 3, 3, 3, 5, 5, 5, 5], + "whole_cost": [ + 1790, + 364, + 280, + 259, + 201, + 623, + 90, + 312, + 359, + 301, + 359, + 801, + ], + "cost1": [12, 15, 10, 24, 39, 1, 0, 90, 45, 34, 1, 12], + } + ).set_index("date") + + expected = ( + df.groupby("user_id")["whole_cost"] + .resample(freq) + .sum(min_count=1) # XXX + .dropna() + .reorder_levels(["date", "user_id"]) + .sort_index() + .astype("int64") + ) + expected.name = "whole_cost" + + result1 = ( + df.sort_index().groupby([Grouper(freq=freq), "user_id"])["whole_cost"].sum() + ) + tm.assert_series_equal(result1, expected) + + result2 = df.groupby([Grouper(freq=freq), "user_id"])["whole_cost"].sum() + tm.assert_series_equal(result2, expected) + + def test_timegrouper_get_group(self): + # GH 6914 + + df_original = DataFrame( + { + "Buyer": "Carl Joe Joe Carl Joe Carl".split(), + "Quantity": [18, 3, 5, 1, 9, 3], + "Date": [ + datetime(2013, 9, 1, 13, 0), + datetime(2013, 9, 1, 13, 5), + datetime(2013, 10, 1, 20, 0), + datetime(2013, 10, 3, 10, 0), + datetime(2013, 12, 2, 12, 0), + datetime(2013, 9, 2, 14, 0), + ], + } + ) + df_reordered = df_original.sort_values(by="Quantity") + + # single grouping + expected_list = [ + df_original.iloc[[0, 1, 5]], + df_original.iloc[[2, 3]], + df_original.iloc[[4]], + ] + dt_list = ["2013-09-30", "2013-10-31", "2013-12-31"] + + for df in [df_original, df_reordered]: + grouped = df.groupby(Grouper(freq="ME", key="Date")) + for t, expected in zip(dt_list, expected_list): + dt = Timestamp(t) + result = grouped.get_group(dt) + tm.assert_frame_equal(result, expected) + + # multiple grouping + expected_list = [ + df_original.iloc[[1]], + df_original.iloc[[3]], + df_original.iloc[[4]], + ] + g_list = [("Joe", "2013-09-30"), ("Carl", "2013-10-31"), ("Joe", "2013-12-31")] + + for df in [df_original, df_reordered]: + grouped = df.groupby(["Buyer", Grouper(freq="ME", key="Date")]) + for (b, t), expected in zip(g_list, expected_list): + dt = Timestamp(t) + result = grouped.get_group((b, dt)) + tm.assert_frame_equal(result, expected) + + # with index + df_original = df_original.set_index("Date") + df_reordered = df_original.sort_values(by="Quantity") + + expected_list = [ + df_original.iloc[[0, 1, 5]], + df_original.iloc[[2, 3]], + df_original.iloc[[4]], + ] + + for df in [df_original, df_reordered]: + grouped = df.groupby(Grouper(freq="ME")) + for t, expected in zip(dt_list, expected_list): + dt = Timestamp(t) + result = grouped.get_group(dt) + tm.assert_frame_equal(result, expected) + + def test_timegrouper_apply_return_type_series(self): + # Using `apply` with the `TimeGrouper` should give the + # same return type as an `apply` with a `Grouper`. + # Issue #11742 + df = DataFrame({"date": ["10/10/2000", "11/10/2000"], "value": [10, 13]}) + df_dt = df.copy() + df_dt["date"] = pd.to_datetime(df_dt["date"]) + + def sumfunc_series(x): + return Series([x["value"].sum()], ("sum",)) + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = df.groupby(Grouper(key="date")).apply(sumfunc_series) + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df_dt.groupby(Grouper(freq="ME", key="date")).apply(sumfunc_series) + tm.assert_frame_equal( + result.reset_index(drop=True), expected.reset_index(drop=True) + ) + + def test_timegrouper_apply_return_type_value(self): + # Using `apply` with the `TimeGrouper` should give the + # same return type as an `apply` with a `Grouper`. + # Issue #11742 + df = DataFrame({"date": ["10/10/2000", "11/10/2000"], "value": [10, 13]}) + df_dt = df.copy() + df_dt["date"] = pd.to_datetime(df_dt["date"]) + + def sumfunc_value(x): + return x.value.sum() + + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = df.groupby(Grouper(key="date")).apply(sumfunc_value) + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df_dt.groupby(Grouper(freq="ME", key="date")).apply(sumfunc_value) + tm.assert_series_equal( + result.reset_index(drop=True), expected.reset_index(drop=True) + ) + + def test_groupby_groups_datetimeindex(self): + # GH#1430 + periods = 1000 + ind = date_range(start="2012/1/1", freq="5min", periods=periods) + df = DataFrame( + {"high": np.arange(periods), "low": np.arange(periods)}, index=ind + ) + grouped = df.groupby(lambda x: datetime(x.year, x.month, x.day)) + + # it works! + groups = grouped.groups + assert isinstance(next(iter(groups.keys())), datetime) + + def test_groupby_groups_datetimeindex2(self): + # GH#11442 + index = date_range("2015/01/01", periods=5, name="date") + df = DataFrame({"A": [5, 6, 7, 8, 9], "B": [1, 2, 3, 4, 5]}, index=index) + result = df.groupby(level="date").groups + dates = ["2015-01-05", "2015-01-04", "2015-01-03", "2015-01-02", "2015-01-01"] + expected = { + Timestamp(date): DatetimeIndex([date], name="date") for date in dates + } + tm.assert_dict_equal(result, expected) + + grouped = df.groupby(level="date") + for date in dates: + result = grouped.get_group(date) + data = [[df.loc[date, "A"], df.loc[date, "B"]]] + expected_index = DatetimeIndex( + [date], name="date", freq="D", dtype=index.dtype + ) + expected = DataFrame(data, columns=list("AB"), index=expected_index) + tm.assert_frame_equal(result, expected) + + def test_groupby_groups_datetimeindex_tz(self): + # GH 3950 + dates = [ + "2011-07-19 07:00:00", + "2011-07-19 08:00:00", + "2011-07-19 09:00:00", + "2011-07-19 07:00:00", + "2011-07-19 08:00:00", + "2011-07-19 09:00:00", + ] + df = DataFrame( + { + "label": ["a", "a", "a", "b", "b", "b"], + "datetime": dates, + "value1": np.arange(6, dtype="int64"), + "value2": [1, 2] * 3, + } + ) + df["datetime"] = df["datetime"].apply(lambda d: Timestamp(d, tz="US/Pacific")) + + exp_idx1 = DatetimeIndex( + [ + "2011-07-19 07:00:00", + "2011-07-19 07:00:00", + "2011-07-19 08:00:00", + "2011-07-19 08:00:00", + "2011-07-19 09:00:00", + "2011-07-19 09:00:00", + ], + tz="US/Pacific", + name="datetime", + ) + exp_idx2 = Index(["a", "b"] * 3, name="label") + exp_idx = MultiIndex.from_arrays([exp_idx1, exp_idx2]) + expected = DataFrame( + {"value1": [0, 3, 1, 4, 2, 5], "value2": [1, 2, 2, 1, 1, 2]}, + index=exp_idx, + columns=["value1", "value2"], + ) + + result = df.groupby(["datetime", "label"]).sum() + tm.assert_frame_equal(result, expected) + + # by level + didx = DatetimeIndex(dates, tz="Asia/Tokyo") + df = DataFrame( + {"value1": np.arange(6, dtype="int64"), "value2": [1, 2, 3, 1, 2, 3]}, + index=didx, + ) + + exp_idx = DatetimeIndex( + ["2011-07-19 07:00:00", "2011-07-19 08:00:00", "2011-07-19 09:00:00"], + tz="Asia/Tokyo", + ) + expected = DataFrame( + {"value1": [3, 5, 7], "value2": [2, 4, 6]}, + index=exp_idx, + columns=["value1", "value2"], + ) + + result = df.groupby(level=0).sum() + tm.assert_frame_equal(result, expected) + + def test_frame_datetime64_handling_groupby(self): + # it works! + df = DataFrame( + [(3, np.datetime64("2012-07-03")), (3, np.datetime64("2012-07-04"))], + columns=["a", "date"], + ) + result = df.groupby("a").first() + assert result["date"][3] == Timestamp("2012-07-03") + + def test_groupby_multi_timezone(self): + # combining multiple / different timezones yields UTC + df = DataFrame( + { + "value": range(5), + "date": [ + "2000-01-28 16:47:00", + "2000-01-29 16:48:00", + "2000-01-30 16:49:00", + "2000-01-31 16:50:00", + "2000-01-01 16:50:00", + ], + "tz": [ + "America/Chicago", + "America/Chicago", + "America/Los_Angeles", + "America/Chicago", + "America/New_York", + ], + } + ) + + result = df.groupby("tz", group_keys=False).date.apply( + lambda x: pd.to_datetime(x).dt.tz_localize(x.name) + ) + + expected = Series( + [ + Timestamp("2000-01-28 16:47:00-0600", tz="America/Chicago"), + Timestamp("2000-01-29 16:48:00-0600", tz="America/Chicago"), + Timestamp("2000-01-30 16:49:00-0800", tz="America/Los_Angeles"), + Timestamp("2000-01-31 16:50:00-0600", tz="America/Chicago"), + Timestamp("2000-01-01 16:50:00-0500", tz="America/New_York"), + ], + name="date", + dtype=object, + ) + tm.assert_series_equal(result, expected) + + tz = "America/Chicago" + res_values = df.groupby("tz").date.get_group(tz) + result = pd.to_datetime(res_values).dt.tz_localize(tz) + exp_values = Series( + ["2000-01-28 16:47:00", "2000-01-29 16:48:00", "2000-01-31 16:50:00"], + index=[0, 1, 3], + name="date", + ) + expected = pd.to_datetime(exp_values).dt.tz_localize(tz) + tm.assert_series_equal(result, expected) + + def test_groupby_groups_periods(self): + dates = [ + "2011-07-19 07:00:00", + "2011-07-19 08:00:00", + "2011-07-19 09:00:00", + "2011-07-19 07:00:00", + "2011-07-19 08:00:00", + "2011-07-19 09:00:00", + ] + df = DataFrame( + { + "label": ["a", "a", "a", "b", "b", "b"], + "period": [pd.Period(d, freq="h") for d in dates], + "value1": np.arange(6, dtype="int64"), + "value2": [1, 2] * 3, + } + ) + + exp_idx1 = pd.PeriodIndex( + [ + "2011-07-19 07:00:00", + "2011-07-19 07:00:00", + "2011-07-19 08:00:00", + "2011-07-19 08:00:00", + "2011-07-19 09:00:00", + "2011-07-19 09:00:00", + ], + freq="h", + name="period", + ) + exp_idx2 = Index(["a", "b"] * 3, name="label") + exp_idx = MultiIndex.from_arrays([exp_idx1, exp_idx2]) + expected = DataFrame( + {"value1": [0, 3, 1, 4, 2, 5], "value2": [1, 2, 2, 1, 1, 2]}, + index=exp_idx, + columns=["value1", "value2"], + ) + + result = df.groupby(["period", "label"]).sum() + tm.assert_frame_equal(result, expected) + + # by level + didx = pd.PeriodIndex(dates, freq="h") + df = DataFrame( + {"value1": np.arange(6, dtype="int64"), "value2": [1, 2, 3, 1, 2, 3]}, + index=didx, + ) + + exp_idx = pd.PeriodIndex( + ["2011-07-19 07:00:00", "2011-07-19 08:00:00", "2011-07-19 09:00:00"], + freq="h", + ) + expected = DataFrame( + {"value1": [3, 5, 7], "value2": [2, 4, 6]}, + index=exp_idx, + columns=["value1", "value2"], + ) + + result = df.groupby(level=0).sum() + tm.assert_frame_equal(result, expected) + + def test_groupby_first_datetime64(self): + df = DataFrame([(1, 1351036800000000000), (2, 1351036800000000000)]) + df[1] = df[1].astype("M8[ns]") + + assert issubclass(df[1].dtype.type, np.datetime64) + + result = df.groupby(level=0).first() + got_dt = result[1].dtype + assert issubclass(got_dt.type, np.datetime64) + + result = df[1].groupby(level=0).first() + got_dt = result.dtype + assert issubclass(got_dt.type, np.datetime64) + + def test_groupby_max_datetime64(self): + # GH 5869 + # datetimelike dtype conversion from int + df = DataFrame({"A": Timestamp("20130101"), "B": np.arange(5)}) + # TODO: can we retain second reso in .apply here? + expected = df.groupby("A")["A"].apply(lambda x: x.max()).astype("M8[s]") + result = df.groupby("A")["A"].max() + tm.assert_series_equal(result, expected) + + def test_groupby_datetime64_32_bit(self): + # GH 6410 / numpy 4328 + # 32-bit under 1.9-dev indexing issue + + df = DataFrame({"A": range(2), "B": [Timestamp("2000-01-1")] * 2}) + result = df.groupby("A")["B"].transform("min") + expected = Series([Timestamp("2000-01-1")] * 2, name="B") + tm.assert_series_equal(result, expected) + + def test_groupby_with_timezone_selection(self): + # GH 11616 + # Test that column selection returns output in correct timezone. + + df = DataFrame( + { + "factor": np.random.default_rng(2).integers(0, 3, size=60), + "time": date_range("01/01/2000 00:00", periods=60, freq="s", tz="UTC"), + } + ) + df1 = df.groupby("factor").max()["time"] + df2 = df.groupby("factor")["time"].max() + tm.assert_series_equal(df1, df2) + + def test_timezone_info(self): + # see gh-11682: Timezone info lost when broadcasting + # scalar datetime to DataFrame + + df = DataFrame({"a": [1], "b": [datetime.now(pytz.utc)]}) + assert df["b"][0].tzinfo == pytz.utc + df = DataFrame({"a": [1, 2, 3]}) + df["b"] = datetime.now(pytz.utc) + assert df["b"][0].tzinfo == pytz.utc + + def test_datetime_count(self): + df = DataFrame( + {"a": [1, 2, 3] * 2, "dates": date_range("now", periods=6, freq="min")} + ) + result = df.groupby("a").dates.count() + expected = Series([2, 2, 2], index=Index([1, 2, 3], name="a"), name="dates") + tm.assert_series_equal(result, expected) + + def test_first_last_max_min_on_time_data(self): + # GH 10295 + # Verify that NaT is not in the result of max, min, first and last on + # Dataframe with datetime or timedelta values. + df_test = DataFrame( + { + "dt": [ + np.nan, + "2015-07-24 10:10", + "2015-07-25 11:11", + "2015-07-23 12:12", + np.nan, + ], + "td": [ + np.nan, + timedelta(days=1), + timedelta(days=2), + timedelta(days=3), + np.nan, + ], + } + ) + df_test.dt = pd.to_datetime(df_test.dt) + df_test["group"] = "A" + df_ref = df_test[df_test.dt.notna()] + + grouped_test = df_test.groupby("group") + grouped_ref = df_ref.groupby("group") + + tm.assert_frame_equal(grouped_ref.max(), grouped_test.max()) + tm.assert_frame_equal(grouped_ref.min(), grouped_test.min()) + tm.assert_frame_equal(grouped_ref.first(), grouped_test.first()) + tm.assert_frame_equal(grouped_ref.last(), grouped_test.last()) + + def test_nunique_with_timegrouper_and_nat(self): + # GH 17575 + test = DataFrame( + { + "time": [ + Timestamp("2016-06-28 09:35:35"), + pd.NaT, + Timestamp("2016-06-28 16:46:28"), + ], + "data": ["1", "2", "3"], + } + ) + + grouper = Grouper(key="time", freq="h") + result = test.groupby(grouper)["data"].nunique() + expected = test[test.time.notnull()].groupby(grouper)["data"].nunique() + expected.index = expected.index._with_freq(None) + tm.assert_series_equal(result, expected) + + def test_scalar_call_versus_list_call(self): + # Issue: 17530 + data_frame = { + "location": ["shanghai", "beijing", "shanghai"], + "time": Series( + ["2017-08-09 13:32:23", "2017-08-11 23:23:15", "2017-08-11 22:23:15"], + dtype="datetime64[ns]", + ), + "value": [1, 2, 3], + } + data_frame = DataFrame(data_frame).set_index("time") + grouper = Grouper(freq="D") + + grouped = data_frame.groupby(grouper) + result = grouped.count() + grouped = data_frame.groupby([grouper]) + expected = grouped.count() + + tm.assert_frame_equal(result, expected) + + def test_grouper_period_index(self): + # GH 32108 + periods = 2 + index = pd.period_range( + start="2018-01", periods=periods, freq="M", name="Month" + ) + period_series = Series(range(periods), index=index) + result = period_series.groupby(period_series.index.month).sum() + + expected = Series( + range(periods), index=Index(range(1, periods + 1), name=index.name) + ) + tm.assert_series_equal(result, expected) + + def test_groupby_apply_timegrouper_with_nat_dict_returns( + self, groupby_with_truncated_bingrouper + ): + # GH#43500 case where gb._grouper.result_index and gb._grouper.group_keys_seq + # have different lengths that goes through the `isinstance(values[0], dict)` + # path + gb = groupby_with_truncated_bingrouper + + res = gb["Quantity"].apply(lambda x: {"foo": len(x)}) + + df = gb.obj + unit = df["Date"]._values.unit + dti = date_range("2013-09-01", "2013-10-01", freq="5D", name="Date", unit=unit) + mi = MultiIndex.from_arrays([dti, ["foo"] * len(dti)]) + expected = Series([3, 0, 0, 0, 0, 0, 2], index=mi, name="Quantity") + tm.assert_series_equal(res, expected) + + def test_groupby_apply_timegrouper_with_nat_scalar_returns( + self, groupby_with_truncated_bingrouper + ): + # GH#43500 Previously raised ValueError bc used index with incorrect + # length in wrap_applied_result + gb = groupby_with_truncated_bingrouper + + res = gb["Quantity"].apply(lambda x: x.iloc[0] if len(x) else np.nan) + + df = gb.obj + unit = df["Date"]._values.unit + dti = date_range("2013-09-01", "2013-10-01", freq="5D", name="Date", unit=unit) + expected = Series( + [18, np.nan, np.nan, np.nan, np.nan, np.nan, 5], + index=dti._with_freq(None), + name="Quantity", + ) + + tm.assert_series_equal(res, expected) + + def test_groupby_apply_timegrouper_with_nat_apply_squeeze( + self, frame_for_truncated_bingrouper + ): + df = frame_for_truncated_bingrouper + + # We need to create a GroupBy object with only one non-NaT group, + # so use a huge freq so that all non-NaT dates will be grouped together + tdg = Grouper(key="Date", freq="100YE") + gb = df.groupby(tdg) + + # check that we will go through the singular_series path + # in _wrap_applied_output_series + assert gb.ngroups == 1 + assert gb._selected_obj._get_axis(gb.axis).nlevels == 1 + + # function that returns a Series + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + res = gb.apply(lambda x: x["Quantity"] * 2) + + dti = Index([Timestamp("2013-12-31")], dtype=df["Date"].dtype, name="Date") + expected = DataFrame( + [[36, 6, 6, 10, 2]], + index=dti, + columns=Index([0, 1, 5, 2, 3], name="Quantity"), + ) + tm.assert_frame_equal(res, expected) + + @pytest.mark.single_cpu + def test_groupby_agg_numba_timegrouper_with_nat( + self, groupby_with_truncated_bingrouper + ): + pytest.importorskip("numba") + + # See discussion in GH#43487 + gb = groupby_with_truncated_bingrouper + + result = gb["Quantity"].aggregate( + lambda values, index: np.nanmean(values), engine="numba" + ) + + expected = gb["Quantity"].aggregate("mean") + tm.assert_series_equal(result, expected) + + result_df = gb[["Quantity"]].aggregate( + lambda values, index: np.nanmean(values), engine="numba" + ) + expected_df = gb[["Quantity"]].aggregate("mean") + tm.assert_frame_equal(result_df, expected_df) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/transform/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/transform/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/transform/test_numba.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/transform/test_numba.py new file mode 100644 index 0000000000000000000000000000000000000000..5afc6f3bdcd3c223157f05801d2ec83432f80d47 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/transform/test_numba.py @@ -0,0 +1,294 @@ +import numpy as np +import pytest + +from pandas.compat import is_platform_arm +from pandas.errors import NumbaUtilError + +from pandas import ( + DataFrame, + Series, + option_context, +) +import pandas._testing as tm +from pandas.util.version import Version + +pytestmark = [pytest.mark.single_cpu] + +numba = pytest.importorskip("numba") +pytestmark.append( + pytest.mark.skipif( + Version(numba.__version__) == Version("0.61") and is_platform_arm(), + reason=f"Segfaults on ARM platforms with numba {numba.__version__}", + ) +) + + +def test_correct_function_signature(): + pytest.importorskip("numba") + + def incorrect_function(x): + return x + 1 + + data = DataFrame( + {"key": ["a", "a", "b", "b", "a"], "data": [1.0, 2.0, 3.0, 4.0, 5.0]}, + columns=["key", "data"], + ) + with pytest.raises(NumbaUtilError, match="The first 2"): + data.groupby("key").transform(incorrect_function, engine="numba") + + with pytest.raises(NumbaUtilError, match="The first 2"): + data.groupby("key")["data"].transform(incorrect_function, engine="numba") + + +def test_check_nopython_kwargs(): + pytest.importorskip("numba") + + def incorrect_function(values, index): + return values + 1 + + data = DataFrame( + {"key": ["a", "a", "b", "b", "a"], "data": [1.0, 2.0, 3.0, 4.0, 5.0]}, + columns=["key", "data"], + ) + with pytest.raises(NumbaUtilError, match="numba does not support"): + data.groupby("key").transform(incorrect_function, engine="numba", a=1) + + with pytest.raises(NumbaUtilError, match="numba does not support"): + data.groupby("key")["data"].transform(incorrect_function, engine="numba", a=1) + + +@pytest.mark.filterwarnings("ignore") +# Filter warnings when parallel=True and the function can't be parallelized by Numba +@pytest.mark.parametrize("jit", [True, False]) +@pytest.mark.parametrize("pandas_obj", ["Series", "DataFrame"]) +@pytest.mark.parametrize("as_index", [True, False]) +def test_numba_vs_cython(jit, pandas_obj, nogil, parallel, nopython, as_index): + pytest.importorskip("numba") + + def func(values, index): + return values + 1 + + if jit: + # Test accepted jitted functions + import numba + + func = numba.jit(func) + + data = DataFrame( + {0: ["a", "a", "b", "b", "a"], 1: [1.0, 2.0, 3.0, 4.0, 5.0]}, columns=[0, 1] + ) + engine_kwargs = {"nogil": nogil, "parallel": parallel, "nopython": nopython} + grouped = data.groupby(0, as_index=as_index) + if pandas_obj == "Series": + grouped = grouped[1] + + result = grouped.transform(func, engine="numba", engine_kwargs=engine_kwargs) + expected = grouped.transform(lambda x: x + 1, engine="cython") + + tm.assert_equal(result, expected) + + +@pytest.mark.filterwarnings("ignore") +# Filter warnings when parallel=True and the function can't be parallelized by Numba +@pytest.mark.parametrize("jit", [True, False]) +@pytest.mark.parametrize("pandas_obj", ["Series", "DataFrame"]) +def test_cache(jit, pandas_obj, nogil, parallel, nopython): + # Test that the functions are cached correctly if we switch functions + pytest.importorskip("numba") + + def func_1(values, index): + return values + 1 + + def func_2(values, index): + return values * 5 + + if jit: + import numba + + func_1 = numba.jit(func_1) + func_2 = numba.jit(func_2) + + data = DataFrame( + {0: ["a", "a", "b", "b", "a"], 1: [1.0, 2.0, 3.0, 4.0, 5.0]}, columns=[0, 1] + ) + engine_kwargs = {"nogil": nogil, "parallel": parallel, "nopython": nopython} + grouped = data.groupby(0) + if pandas_obj == "Series": + grouped = grouped[1] + + result = grouped.transform(func_1, engine="numba", engine_kwargs=engine_kwargs) + expected = grouped.transform(lambda x: x + 1, engine="cython") + tm.assert_equal(result, expected) + + result = grouped.transform(func_2, engine="numba", engine_kwargs=engine_kwargs) + expected = grouped.transform(lambda x: x * 5, engine="cython") + tm.assert_equal(result, expected) + + # Retest func_1 which should use the cache + result = grouped.transform(func_1, engine="numba", engine_kwargs=engine_kwargs) + expected = grouped.transform(lambda x: x + 1, engine="cython") + tm.assert_equal(result, expected) + + +def test_use_global_config(): + pytest.importorskip("numba") + + def func_1(values, index): + return values + 1 + + data = DataFrame( + {0: ["a", "a", "b", "b", "a"], 1: [1.0, 2.0, 3.0, 4.0, 5.0]}, columns=[0, 1] + ) + grouped = data.groupby(0) + expected = grouped.transform(func_1, engine="numba") + with option_context("compute.use_numba", True): + result = grouped.transform(func_1, engine=None) + tm.assert_frame_equal(expected, result) + + +# TODO: Test more than just reductions (e.g. actually test transformations once we have +@pytest.mark.parametrize( + "agg_func", [["min", "max"], "min", {"B": ["min", "max"], "C": "sum"}] +) +def test_string_cython_vs_numba(agg_func, numba_supported_reductions): + pytest.importorskip("numba") + agg_func, kwargs = numba_supported_reductions + data = DataFrame( + {0: ["a", "a", "b", "b", "a"], 1: [1.0, 2.0, 3.0, 4.0, 5.0]}, columns=[0, 1] + ) + grouped = data.groupby(0) + + result = grouped.transform(agg_func, engine="numba", **kwargs) + expected = grouped.transform(agg_func, engine="cython", **kwargs) + tm.assert_frame_equal(result, expected) + + result = grouped[1].transform(agg_func, engine="numba", **kwargs) + expected = grouped[1].transform(agg_func, engine="cython", **kwargs) + tm.assert_series_equal(result, expected) + + +def test_args_not_cached(): + # GH 41647 + pytest.importorskip("numba") + + def sum_last(values, index, n): + return values[-n:].sum() + + df = DataFrame({"id": [0, 0, 1, 1], "x": [1, 1, 1, 1]}) + grouped_x = df.groupby("id")["x"] + result = grouped_x.transform(sum_last, 1, engine="numba") + expected = Series([1.0] * 4, name="x") + tm.assert_series_equal(result, expected) + + result = grouped_x.transform(sum_last, 2, engine="numba") + expected = Series([2.0] * 4, name="x") + tm.assert_series_equal(result, expected) + + +def test_index_data_correctly_passed(): + # GH 43133 + pytest.importorskip("numba") + + def f(values, index): + return index - 1 + + df = DataFrame({"group": ["A", "A", "B"], "v": [4, 5, 6]}, index=[-1, -2, -3]) + result = df.groupby("group").transform(f, engine="numba") + expected = DataFrame([-4.0, -3.0, -2.0], columns=["v"], index=[-1, -2, -3]) + tm.assert_frame_equal(result, expected) + + +def test_engine_kwargs_not_cached(): + # If the user passes a different set of engine_kwargs don't return the same + # jitted function + pytest.importorskip("numba") + nogil = True + parallel = False + nopython = True + + def func_kwargs(values, index): + return nogil + parallel + nopython + + engine_kwargs = {"nopython": nopython, "nogil": nogil, "parallel": parallel} + df = DataFrame({"value": [0, 0, 0]}) + result = df.groupby(level=0).transform( + func_kwargs, engine="numba", engine_kwargs=engine_kwargs + ) + expected = DataFrame({"value": [2.0, 2.0, 2.0]}) + tm.assert_frame_equal(result, expected) + + nogil = False + engine_kwargs = {"nopython": nopython, "nogil": nogil, "parallel": parallel} + result = df.groupby(level=0).transform( + func_kwargs, engine="numba", engine_kwargs=engine_kwargs + ) + expected = DataFrame({"value": [1.0, 1.0, 1.0]}) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.filterwarnings("ignore") +def test_multiindex_one_key(nogil, parallel, nopython): + pytest.importorskip("numba") + + def numba_func(values, index): + return 1 + + df = DataFrame([{"A": 1, "B": 2, "C": 3}]).set_index(["A", "B"]) + engine_kwargs = {"nopython": nopython, "nogil": nogil, "parallel": parallel} + result = df.groupby("A").transform( + numba_func, engine="numba", engine_kwargs=engine_kwargs + ) + expected = DataFrame([{"A": 1, "B": 2, "C": 1.0}]).set_index(["A", "B"]) + tm.assert_frame_equal(result, expected) + + +def test_multiindex_multi_key_not_supported(nogil, parallel, nopython): + pytest.importorskip("numba") + + def numba_func(values, index): + return 1 + + df = DataFrame([{"A": 1, "B": 2, "C": 3}]).set_index(["A", "B"]) + engine_kwargs = {"nopython": nopython, "nogil": nogil, "parallel": parallel} + with pytest.raises(NotImplementedError, match="more than 1 grouping labels"): + df.groupby(["A", "B"]).transform( + numba_func, engine="numba", engine_kwargs=engine_kwargs + ) + + +def test_multilabel_numba_vs_cython(numba_supported_reductions): + pytest.importorskip("numba") + reduction, kwargs = numba_supported_reductions + df = DataFrame( + { + "A": ["foo", "bar", "foo", "bar", "foo", "bar", "foo", "foo"], + "B": ["one", "one", "two", "three", "two", "two", "one", "three"], + "C": np.random.default_rng(2).standard_normal(8), + "D": np.random.default_rng(2).standard_normal(8), + } + ) + gb = df.groupby(["A", "B"]) + res_agg = gb.transform(reduction, engine="numba", **kwargs) + expected_agg = gb.transform(reduction, engine="cython", **kwargs) + tm.assert_frame_equal(res_agg, expected_agg) + + +def test_multilabel_udf_numba_vs_cython(): + pytest.importorskip("numba") + df = DataFrame( + { + "A": ["foo", "bar", "foo", "bar", "foo", "bar", "foo", "foo"], + "B": ["one", "one", "two", "three", "two", "two", "one", "three"], + "C": np.random.default_rng(2).standard_normal(8), + "D": np.random.default_rng(2).standard_normal(8), + } + ) + gb = df.groupby(["A", "B"]) + result = gb.transform( + lambda values, index: (values - values.min()) / (values.max() - values.min()), + engine="numba", + ) + expected = gb.transform( + lambda x: (x - x.min()) / (x.max() - x.min()), engine="cython" + ) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/transform/test_transform.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/transform/test_transform.py new file mode 100644 index 0000000000000000000000000000000000000000..18ce6e93de402cabe67b2802e52553322df8cef0 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/groupby/transform/test_transform.py @@ -0,0 +1,1710 @@ +""" test with the .transform """ +import numpy as np +import pytest + +from pandas._libs import lib + +from pandas.core.dtypes.common import ensure_platform_int + +import pandas as pd +from pandas import ( + Categorical, + DataFrame, + Index, + MultiIndex, + Series, + Timestamp, + concat, + date_range, +) +import pandas._testing as tm +from pandas.tests.groupby import get_groupby_method_args + + +def assert_fp_equal(a, b): + assert (np.abs(a - b) < 1e-12).all() + + +def test_transform(): + data = Series(np.arange(9) // 3, index=np.arange(9)) + + index = np.arange(9) + np.random.default_rng(2).shuffle(index) + data = data.reindex(index) + + grouped = data.groupby(lambda x: x // 3) + + transformed = grouped.transform(lambda x: x * x.sum()) + assert transformed[7] == 12 + + # GH 8046 + # make sure that we preserve the input order + + df = DataFrame( + np.arange(6, dtype="int64").reshape(3, 2), columns=["a", "b"], index=[0, 2, 1] + ) + key = [0, 0, 1] + expected = ( + df.sort_index() + .groupby(key) + .transform(lambda x: x - x.mean()) + .groupby(key) + .mean() + ) + result = df.groupby(key).transform(lambda x: x - x.mean()).groupby(key).mean() + tm.assert_frame_equal(result, expected) + + def demean(arr): + return arr - arr.mean(axis=0) + + people = DataFrame( + np.random.default_rng(2).standard_normal((5, 5)), + columns=["a", "b", "c", "d", "e"], + index=["Joe", "Steve", "Wes", "Jim", "Travis"], + ) + key = ["one", "two", "one", "two", "one"] + result = people.groupby(key).transform(demean).groupby(key).mean() + expected = people.groupby(key, group_keys=False).apply(demean).groupby(key).mean() + tm.assert_frame_equal(result, expected) + + # GH 8430 + df = DataFrame( + np.random.default_rng(2).standard_normal((50, 4)), + columns=Index(list("ABCD"), dtype=object), + index=date_range("2000-01-01", periods=50, freq="B"), + ) + g = df.groupby(pd.Grouper(freq="ME")) + g.transform(lambda x: x - 1) + + # GH 9700 + df = DataFrame({"a": range(5, 10), "b": range(5)}) + msg = "using DataFrameGroupBy.max" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby("a").transform(max) + expected = DataFrame({"b": range(5)}) + tm.assert_frame_equal(result, expected) + + +def test_transform_fast(): + df = DataFrame( + { + "id": np.arange(100000) / 3, + "val": np.random.default_rng(2).standard_normal(100000), + } + ) + + grp = df.groupby("id")["val"] + + values = np.repeat(grp.mean().values, ensure_platform_int(grp.count().values)) + expected = Series(values, index=df.index, name="val") + + msg = "using SeriesGroupBy.mean" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = grp.transform(np.mean) + tm.assert_series_equal(result, expected) + + result = grp.transform("mean") + tm.assert_series_equal(result, expected) + + +def test_transform_fast2(): + # GH 12737 + df = DataFrame( + { + "grouping": [0, 1, 1, 3], + "f": [1.1, 2.1, 3.1, 4.5], + "d": date_range("2014-1-1", "2014-1-4"), + "i": [1, 2, 3, 4], + }, + columns=["grouping", "f", "i", "d"], + ) + result = df.groupby("grouping").transform("first") + + dates = Index( + [ + Timestamp("2014-1-1"), + Timestamp("2014-1-2"), + Timestamp("2014-1-2"), + Timestamp("2014-1-4"), + ], + dtype="M8[ns]", + ) + expected = DataFrame( + {"f": [1.1, 2.1, 2.1, 4.5], "d": dates, "i": [1, 2, 2, 4]}, + columns=["f", "i", "d"], + ) + tm.assert_frame_equal(result, expected) + + # selection + result = df.groupby("grouping")[["f", "i"]].transform("first") + expected = expected[["f", "i"]] + tm.assert_frame_equal(result, expected) + + +def test_transform_fast3(): + # dup columns + df = DataFrame([[1, 2, 3], [4, 5, 6]], columns=["g", "a", "a"]) + result = df.groupby("g").transform("first") + expected = df.drop("g", axis=1) + tm.assert_frame_equal(result, expected) + + +def test_transform_broadcast(tsframe, ts): + grouped = ts.groupby(lambda x: x.month) + msg = "using SeriesGroupBy.mean" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = grouped.transform(np.mean) + + tm.assert_index_equal(result.index, ts.index) + for _, gp in grouped: + assert_fp_equal(result.reindex(gp.index), gp.mean()) + + grouped = tsframe.groupby(lambda x: x.month) + msg = "using DataFrameGroupBy.mean" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = grouped.transform(np.mean) + tm.assert_index_equal(result.index, tsframe.index) + for _, gp in grouped: + agged = gp.mean(axis=0) + res = result.reindex(gp.index) + for col in tsframe: + assert_fp_equal(res[col], agged[col]) + + # group columns + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + grouped = tsframe.groupby({"A": 0, "B": 0, "C": 1, "D": 1}, axis=1) + msg = "using DataFrameGroupBy.mean" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = grouped.transform(np.mean) + tm.assert_index_equal(result.index, tsframe.index) + tm.assert_index_equal(result.columns, tsframe.columns) + for _, gp in grouped: + agged = gp.mean(1) + res = result.reindex(columns=gp.columns) + for idx in gp.index: + assert_fp_equal(res.xs(idx), agged[idx]) + + +def test_transform_axis_1(request, transformation_func): + # GH 36308 + + df = DataFrame({"a": [1, 2], "b": [3, 4], "c": [5, 6]}, index=["x", "y"]) + args = get_groupby_method_args(transformation_func, df) + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + gb = df.groupby([0, 0, 1], axis=1) + warn = FutureWarning if transformation_func == "fillna" else None + msg = "DataFrameGroupBy.fillna is deprecated" + with tm.assert_produces_warning(warn, match=msg): + result = gb.transform(transformation_func, *args) + msg = "DataFrameGroupBy.fillna is deprecated" + with tm.assert_produces_warning(warn, match=msg): + expected = df.T.groupby([0, 0, 1]).transform(transformation_func, *args).T + + if transformation_func in ["diff", "shift"]: + # Result contains nans, so transpose coerces to float + expected["b"] = expected["b"].astype("int64") + + # cumcount returns Series; the rest are DataFrame + tm.assert_equal(result, expected) + + +def test_transform_axis_1_reducer(request, reduction_func): + # GH#45715 + if reduction_func in ( + "corrwith", + "ngroup", + "nth", + ): + marker = pytest.mark.xfail(reason="transform incorrectly fails - GH#45986") + request.applymarker(marker) + + df = DataFrame({"a": [1, 2], "b": [3, 4], "c": [5, 6]}, index=["x", "y"]) + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + gb = df.groupby([0, 0, 1], axis=1) + + result = gb.transform(reduction_func) + expected = df.T.groupby([0, 0, 1]).transform(reduction_func).T + tm.assert_equal(result, expected) + + +def test_transform_axis_ts(tsframe): + # make sure that we are setting the axes + # correctly when on axis=0 or 1 + # in the presence of a non-monotonic indexer + # GH12713 + + base = tsframe.iloc[0:5] + r = len(base.index) + c = len(base.columns) + tso = DataFrame( + np.random.default_rng(2).standard_normal((r, c)), + index=base.index, + columns=base.columns, + dtype="float64", + ) + # monotonic + ts = tso + grouped = ts.groupby(lambda x: x.weekday(), group_keys=False) + result = ts - grouped.transform("mean") + expected = grouped.apply(lambda x: x - x.mean(axis=0)) + tm.assert_frame_equal(result, expected) + + ts = ts.T + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + grouped = ts.groupby(lambda x: x.weekday(), axis=1, group_keys=False) + result = ts - grouped.transform("mean") + expected = grouped.apply(lambda x: (x.T - x.mean(1)).T) + tm.assert_frame_equal(result, expected) + + # non-monotonic + ts = tso.iloc[[1, 0] + list(range(2, len(base)))] + grouped = ts.groupby(lambda x: x.weekday(), group_keys=False) + result = ts - grouped.transform("mean") + expected = grouped.apply(lambda x: x - x.mean(axis=0)) + tm.assert_frame_equal(result, expected) + + ts = ts.T + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + grouped = ts.groupby(lambda x: x.weekday(), axis=1, group_keys=False) + result = ts - grouped.transform("mean") + expected = grouped.apply(lambda x: (x.T - x.mean(1)).T) + tm.assert_frame_equal(result, expected) + + +def test_transform_dtype(): + # GH 9807 + # Check transform dtype output is preserved + df = DataFrame([[1, 3], [2, 3]]) + result = df.groupby(1).transform("mean") + expected = DataFrame([[1.5], [1.5]]) + tm.assert_frame_equal(result, expected) + + +def test_transform_bug(): + # GH 5712 + # transforming on a datetime column + df = DataFrame({"A": Timestamp("20130101"), "B": np.arange(5)}) + result = df.groupby("A")["B"].transform(lambda x: x.rank(ascending=False)) + expected = Series(np.arange(5, 0, step=-1), name="B", dtype="float64") + tm.assert_series_equal(result, expected) + + +def test_transform_numeric_to_boolean(): + # GH 16875 + # inconsistency in transforming boolean values + expected = Series([True, True], name="A") + + df = DataFrame({"A": [1.1, 2.2], "B": [1, 2]}) + result = df.groupby("B").A.transform(lambda x: True) + tm.assert_series_equal(result, expected) + + df = DataFrame({"A": [1, 2], "B": [1, 2]}) + result = df.groupby("B").A.transform(lambda x: True) + tm.assert_series_equal(result, expected) + + +def test_transform_datetime_to_timedelta(): + # GH 15429 + # transforming a datetime to timedelta + df = DataFrame({"A": Timestamp("20130101"), "B": np.arange(5)}) + expected = Series( + Timestamp("20130101") - Timestamp("20130101"), index=range(5), name="A" + ) + + # this does date math without changing result type in transform + base_time = df["A"][0] + result = ( + df.groupby("A")["A"].transform(lambda x: x.max() - x.min() + base_time) + - base_time + ) + tm.assert_series_equal(result, expected) + + # this does date math and causes the transform to return timedelta + result = df.groupby("A")["A"].transform(lambda x: x.max() - x.min()) + tm.assert_series_equal(result, expected) + + +def test_transform_datetime_to_numeric(): + # GH 10972 + # convert dt to float + df = DataFrame({"a": 1, "b": date_range("2015-01-01", periods=2, freq="D")}) + result = df.groupby("a").b.transform( + lambda x: x.dt.dayofweek - x.dt.dayofweek.mean() + ) + + expected = Series([-0.5, 0.5], name="b") + tm.assert_series_equal(result, expected) + + # convert dt to int + df = DataFrame({"a": 1, "b": date_range("2015-01-01", periods=2, freq="D")}) + result = df.groupby("a").b.transform( + lambda x: x.dt.dayofweek - x.dt.dayofweek.min() + ) + + expected = Series([0, 1], dtype=np.int32, name="b") + tm.assert_series_equal(result, expected) + + +def test_transform_casting(): + # 13046 + times = [ + "13:43:27", + "14:26:19", + "14:29:01", + "18:39:34", + "18:40:18", + "18:44:30", + "18:46:00", + "18:52:15", + "18:59:59", + "19:17:48", + "19:21:38", + ] + df = DataFrame( + { + "A": [f"B-{i}" for i in range(11)], + "ID3": np.take( + ["a", "b", "c", "d", "e"], [0, 1, 2, 1, 3, 1, 1, 1, 4, 1, 1] + ), + "DATETIME": pd.to_datetime([f"2014-10-08 {time}" for time in times]), + }, + index=pd.RangeIndex(11, name="idx"), + ) + + result = df.groupby("ID3")["DATETIME"].transform(lambda x: x.diff()) + assert lib.is_np_dtype(result.dtype, "m") + + result = df[["ID3", "DATETIME"]].groupby("ID3").transform(lambda x: x.diff()) + assert lib.is_np_dtype(result.DATETIME.dtype, "m") + + +def test_transform_multiple(ts): + grouped = ts.groupby([lambda x: x.year, lambda x: x.month]) + + grouped.transform(lambda x: x * 2) + + msg = "using SeriesGroupBy.mean" + with tm.assert_produces_warning(FutureWarning, match=msg): + grouped.transform(np.mean) + + +def test_dispatch_transform(tsframe): + df = tsframe[::5].reindex(tsframe.index) + + grouped = df.groupby(lambda x: x.month) + + msg = "DataFrameGroupBy.fillna is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + filled = grouped.fillna(method="pad") + msg = "Series.fillna with 'method' is deprecated" + fillit = lambda x: x.fillna(method="pad") + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = df.groupby(lambda x: x.month).transform(fillit) + tm.assert_frame_equal(filled, expected) + + +def test_transform_fillna_null(): + df = DataFrame( + { + "price": [10, 10, 20, 20, 30, 30], + "color": [10, 10, 20, 20, 30, 30], + "cost": (100, 200, 300, 400, 500, 600), + } + ) + msg = "DataFrameGroupBy.fillna is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + with pytest.raises(ValueError, match="Must specify a fill 'value' or 'method'"): + df.groupby(["price"]).transform("fillna") + with tm.assert_produces_warning(FutureWarning, match=msg): + with pytest.raises(ValueError, match="Must specify a fill 'value' or 'method'"): + df.groupby(["price"]).fillna() + + +def test_transform_transformation_func(transformation_func): + # GH 30918 + df = DataFrame( + { + "A": ["foo", "foo", "foo", "foo", "bar", "bar", "baz"], + "B": [1, 2, np.nan, 3, 3, np.nan, 4], + }, + index=date_range("2020-01-01", "2020-01-07"), + ) + if transformation_func == "cumcount": + test_op = lambda x: x.transform("cumcount") + mock_op = lambda x: Series(range(len(x)), x.index) + elif transformation_func == "fillna": + test_op = lambda x: x.transform("fillna", value=0) + mock_op = lambda x: x.fillna(value=0) + elif transformation_func == "ngroup": + test_op = lambda x: x.transform("ngroup") + counter = -1 + + def mock_op(x): + nonlocal counter + counter += 1 + return Series(counter, index=x.index) + + else: + test_op = lambda x: x.transform(transformation_func) + mock_op = lambda x: getattr(x, transformation_func)() + + if transformation_func == "pct_change": + msg = "The default fill_method='pad' in DataFrame.pct_change is deprecated" + groupby_msg = ( + "The default fill_method='ffill' in DataFrameGroupBy.pct_change " + "is deprecated" + ) + warn = FutureWarning + groupby_warn = FutureWarning + elif transformation_func == "fillna": + msg = "" + groupby_msg = "DataFrameGroupBy.fillna is deprecated" + warn = None + groupby_warn = FutureWarning + else: + msg = groupby_msg = "" + warn = groupby_warn = None + + with tm.assert_produces_warning(groupby_warn, match=groupby_msg): + result = test_op(df.groupby("A")) + + # pass the group in same order as iterating `for ... in df.groupby(...)` + # but reorder to match df's index since this is a transform + groups = [df[["B"]].iloc[4:6], df[["B"]].iloc[6:], df[["B"]].iloc[:4]] + with tm.assert_produces_warning(warn, match=msg): + expected = concat([mock_op(g) for g in groups]).sort_index() + # sort_index does not preserve the freq + expected = expected.set_axis(df.index) + + if transformation_func in ("cumcount", "ngroup"): + tm.assert_series_equal(result, expected) + else: + tm.assert_frame_equal(result, expected) + + +def test_transform_select_columns(df): + f = lambda x: x.mean() + result = df.groupby("A")[["C", "D"]].transform(f) + + selection = df[["C", "D"]] + expected = selection.groupby(df["A"]).transform(f) + + tm.assert_frame_equal(result, expected) + + +def test_transform_nuisance_raises(df, using_infer_string): + # case that goes through _transform_item_by_item + + df.columns = ["A", "B", "B", "D"] + + # this also tests orderings in transform between + # series/frame to make sure it's consistent + grouped = df.groupby("A") + + gbc = grouped["B"] + msg = "Could not convert" + if using_infer_string: + msg = "Cannot perform reduction 'mean' with string dtype" + with pytest.raises(TypeError, match=msg): + gbc.transform(lambda x: np.mean(x)) + + with pytest.raises(TypeError, match=msg): + df.groupby("A").transform(lambda x: np.mean(x)) + + +def test_transform_function_aliases(df): + result = df.groupby("A").transform("mean", numeric_only=True) + msg = "using DataFrameGroupBy.mean" + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = df.groupby("A")[["C", "D"]].transform(np.mean) + tm.assert_frame_equal(result, expected) + + result = df.groupby("A")["C"].transform("mean") + msg = "using SeriesGroupBy.mean" + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = df.groupby("A")["C"].transform(np.mean) + tm.assert_series_equal(result, expected) + + +def test_series_fast_transform_date(): + # GH 13191 + df = DataFrame( + {"grouping": [np.nan, 1, 1, 3], "d": date_range("2014-1-1", "2014-1-4")} + ) + result = df.groupby("grouping")["d"].transform("first") + dates = [ + pd.NaT, + Timestamp("2014-1-2"), + Timestamp("2014-1-2"), + Timestamp("2014-1-4"), + ] + expected = Series(dates, name="d", dtype="M8[ns]") + tm.assert_series_equal(result, expected) + + +def test_transform_length(): + # GH 9697 + df = DataFrame({"col1": [1, 1, 2, 2], "col2": [1, 2, 3, np.nan]}) + expected = Series([3.0] * 4) + + def nsum(x): + return np.nansum(x) + + msg = "using DataFrameGroupBy.sum" + with tm.assert_produces_warning(FutureWarning, match=msg): + results = [ + df.groupby("col1").transform(sum)["col2"], + df.groupby("col1")["col2"].transform(sum), + df.groupby("col1").transform(nsum)["col2"], + df.groupby("col1")["col2"].transform(nsum), + ] + for result in results: + tm.assert_series_equal(result, expected, check_names=False) + + +def test_transform_coercion(): + # 14457 + # when we are transforming be sure to not coerce + # via assignment + df = DataFrame({"A": ["a", "a", "b", "b"], "B": [0, 1, 3, 4]}) + g = df.groupby("A") + + msg = "using DataFrameGroupBy.mean" + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = g.transform(np.mean) + + result = g.transform(lambda x: np.mean(x, axis=0)) + tm.assert_frame_equal(result, expected) + + +def test_groupby_transform_with_int(using_infer_string): + # GH 3740, make sure that we might upcast on item-by-item transform + + # floats + df = DataFrame( + { + "A": [1, 1, 1, 2, 2, 2], + "B": Series(1, dtype="float64"), + "C": Series([1, 2, 3, 1, 2, 3], dtype="float64"), + "D": "foo", + } + ) + with np.errstate(all="ignore"): + result = df.groupby("A")[["B", "C"]].transform( + lambda x: (x - x.mean()) / x.std() + ) + expected = DataFrame( + {"B": np.nan, "C": Series([-1, 0, 1, -1, 0, 1], dtype="float64")} + ) + tm.assert_frame_equal(result, expected) + + # int case + df = DataFrame( + { + "A": [1, 1, 1, 2, 2, 2], + "B": 1, + "C": [1, 2, 3, 1, 2, 3], + "D": "foo", + } + ) + msg = "Could not convert" + if using_infer_string: + msg = "Cannot perform reduction 'mean' with string dtype" + with np.errstate(all="ignore"): + with pytest.raises(TypeError, match=msg): + df.groupby("A").transform(lambda x: (x - x.mean()) / x.std()) + result = df.groupby("A")[["B", "C"]].transform( + lambda x: (x - x.mean()) / x.std() + ) + expected = DataFrame({"B": np.nan, "C": [-1.0, 0.0, 1.0, -1.0, 0.0, 1.0]}) + tm.assert_frame_equal(result, expected) + + # int that needs float conversion + s = Series([2, 3, 4, 10, 5, -1]) + df = DataFrame({"A": [1, 1, 1, 2, 2, 2], "B": 1, "C": s, "D": "foo"}) + with np.errstate(all="ignore"): + with pytest.raises(TypeError, match=msg): + df.groupby("A").transform(lambda x: (x - x.mean()) / x.std()) + result = df.groupby("A")[["B", "C"]].transform( + lambda x: (x - x.mean()) / x.std() + ) + + s1 = s.iloc[0:3] + s1 = (s1 - s1.mean()) / s1.std() + s2 = s.iloc[3:6] + s2 = (s2 - s2.mean()) / s2.std() + expected = DataFrame({"B": np.nan, "C": concat([s1, s2])}) + tm.assert_frame_equal(result, expected) + + # int doesn't get downcasted + result = df.groupby("A")[["B", "C"]].transform(lambda x: x * 2 / 2) + expected = DataFrame({"B": 1.0, "C": [2.0, 3.0, 4.0, 10.0, 5.0, -1.0]}) + tm.assert_frame_equal(result, expected) + + +def test_groupby_transform_with_nan_group(): + # GH 9941 + df = DataFrame({"a": range(10), "b": [1, 1, 2, 3, np.nan, 4, 4, 5, 5, 5]}) + msg = "using SeriesGroupBy.max" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = df.groupby(df.b)["a"].transform(max) + expected = Series([1.0, 1.0, 2.0, 3.0, np.nan, 6.0, 6.0, 9.0, 9.0, 9.0], name="a") + tm.assert_series_equal(result, expected) + + +def test_transform_mixed_type(): + index = MultiIndex.from_arrays([[0, 0, 0, 1, 1, 1], [1, 2, 3, 1, 2, 3]]) + df = DataFrame( + { + "d": [1.0, 1.0, 1.0, 2.0, 2.0, 2.0], + "c": np.tile(["a", "b", "c"], 2), + "v": np.arange(1.0, 7.0), + }, + index=index, + ) + + def f(group): + group["g"] = group["d"] * 2 + return group[:1] + + grouped = df.groupby("c") + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = grouped.apply(f) + + assert result["d"].dtype == np.float64 + + # this is by definition a mutating operation! + with pd.option_context("mode.chained_assignment", None): + for key, group in grouped: + res = f(group) + tm.assert_frame_equal(res, result.loc[key]) + + +@pytest.mark.parametrize( + "op, args, targop", + [ + ("cumprod", (), lambda x: x.cumprod()), + ("cumsum", (), lambda x: x.cumsum()), + ("shift", (-1,), lambda x: x.shift(-1)), + ("shift", (1,), lambda x: x.shift()), + ], +) +def test_cython_transform_series(op, args, targop): + # GH 4095 + s = Series(np.random.default_rng(2).standard_normal(1000)) + s_missing = s.copy() + s_missing.iloc[2:10] = np.nan + labels = np.random.default_rng(2).integers(0, 50, size=1000).astype(float) + + # series + for data in [s, s_missing]: + # print(data.head()) + expected = data.groupby(labels).transform(targop) + + tm.assert_series_equal(expected, data.groupby(labels).transform(op, *args)) + tm.assert_series_equal(expected, getattr(data.groupby(labels), op)(*args)) + + +@pytest.mark.parametrize("op", ["cumprod", "cumsum"]) +@pytest.mark.parametrize("skipna", [False, True]) +@pytest.mark.parametrize( + "input, exp", + [ + # When everything is NaN + ({"key": ["b"] * 10, "value": np.nan}, Series([np.nan] * 10, name="value")), + # When there is a single NaN + ( + {"key": ["b"] * 10 + ["a"] * 2, "value": [3] * 3 + [np.nan] + [3] * 8}, + { + ("cumprod", False): [3.0, 9.0, 27.0] + [np.nan] * 7 + [3.0, 9.0], + ("cumprod", True): [ + 3.0, + 9.0, + 27.0, + np.nan, + 81.0, + 243.0, + 729.0, + 2187.0, + 6561.0, + 19683.0, + 3.0, + 9.0, + ], + ("cumsum", False): [3.0, 6.0, 9.0] + [np.nan] * 7 + [3.0, 6.0], + ("cumsum", True): [ + 3.0, + 6.0, + 9.0, + np.nan, + 12.0, + 15.0, + 18.0, + 21.0, + 24.0, + 27.0, + 3.0, + 6.0, + ], + }, + ), + ], +) +def test_groupby_cum_skipna(op, skipna, input, exp): + df = DataFrame(input) + result = df.groupby("key")["value"].transform(op, skipna=skipna) + if isinstance(exp, dict): + expected = exp[(op, skipna)] + else: + expected = exp + expected = Series(expected, name="value") + tm.assert_series_equal(expected, result) + + +@pytest.fixture +def frame(): + floating = Series(np.random.default_rng(2).standard_normal(10)) + floating_missing = floating.copy() + floating_missing.iloc[2:7] = np.nan + strings = list("abcde") * 2 + strings_missing = strings[:] + strings_missing[5] = np.nan + + df = DataFrame( + { + "float": floating, + "float_missing": floating_missing, + "int": [1, 1, 1, 1, 2] * 2, + "datetime": date_range("1990-1-1", periods=10), + "timedelta": pd.timedelta_range(1, freq="s", periods=10), + "string": strings, + "string_missing": strings_missing, + "cat": Categorical(strings), + }, + ) + return df + + +@pytest.fixture +def frame_mi(frame): + frame.index = MultiIndex.from_product([range(5), range(2)]) + return frame + + +@pytest.mark.slow +@pytest.mark.parametrize( + "op, args, targop", + [ + ("cumprod", (), lambda x: x.cumprod()), + ("cumsum", (), lambda x: x.cumsum()), + ("shift", (-1,), lambda x: x.shift(-1)), + ("shift", (1,), lambda x: x.shift()), + ], +) +@pytest.mark.parametrize("df_fix", ["frame", "frame_mi"]) +@pytest.mark.parametrize( + "gb_target", + [ + {"by": np.random.default_rng(2).integers(0, 50, size=10).astype(float)}, + {"level": 0}, + {"by": "string"}, + pytest.param({"by": "string_missing"}, marks=pytest.mark.xfail), + {"by": ["int", "string"]}, + ], +) +def test_cython_transform_frame(request, op, args, targop, df_fix, gb_target): + df = request.getfixturevalue(df_fix) + gb = df.groupby(group_keys=False, **gb_target) + + if op != "shift" and "int" not in gb_target: + # numeric apply fastpath promotes dtype so have + # to apply separately and concat + i = gb[["int"]].apply(targop) + f = gb[["float", "float_missing"]].apply(targop) + expected = concat([f, i], axis=1) + else: + if op != "shift" or not isinstance(gb_target.get("by"), (str, list)): + warn = None + else: + warn = FutureWarning + msg = "DataFrameGroupBy.apply operated on the grouping columns" + with tm.assert_produces_warning(warn, match=msg): + expected = gb.apply(targop) + + expected = expected.sort_index(axis=1) + if op == "shift": + depr_msg = "The 'downcast' keyword in fillna is deprecated" + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + expected["string_missing"] = expected["string_missing"].fillna( + np.nan, downcast=False + ) + expected["string"] = expected["string"].fillna(np.nan, downcast=False) + + result = gb[expected.columns].transform(op, *args).sort_index(axis=1) + tm.assert_frame_equal(result, expected) + result = getattr(gb[expected.columns], op)(*args).sort_index(axis=1) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.slow +@pytest.mark.parametrize( + "op, args, targop", + [ + ("cumprod", (), lambda x: x.cumprod()), + ("cumsum", (), lambda x: x.cumsum()), + ("shift", (-1,), lambda x: x.shift(-1)), + ("shift", (1,), lambda x: x.shift()), + ], +) +@pytest.mark.parametrize("df_fix", ["frame", "frame_mi"]) +@pytest.mark.parametrize( + "gb_target", + [ + {"by": np.random.default_rng(2).integers(0, 50, size=10).astype(float)}, + {"level": 0}, + {"by": "string"}, + # TODO: create xfail condition given other params + # {"by": 'string_missing'}, + {"by": ["int", "string"]}, + ], +) +@pytest.mark.parametrize( + "column", + [ + "float", + "float_missing", + "int", + "datetime", + "timedelta", + "string", + "string_missing", + ], +) +def test_cython_transform_frame_column( + request, op, args, targop, df_fix, gb_target, column +): + df = request.getfixturevalue(df_fix) + gb = df.groupby(group_keys=False, **gb_target) + c = column + if ( + c not in ["float", "int", "float_missing"] + and op != "shift" + and not (c == "timedelta" and op == "cumsum") + ): + msg = "|".join( + [ + "does not support .* operations", + ".* is not supported for object dtype", + "is not implemented for this dtype", + ".* is not supported for str dtype", + "dtype 'str' does not support operation '.*'", + ] + ) + with pytest.raises(TypeError, match=msg): + gb[c].transform(op) + with pytest.raises(TypeError, match=msg): + getattr(gb[c], op)() + else: + expected = gb[c].apply(targop) + expected.name = c + if c in ["string_missing", "string"]: + depr_msg = "The 'downcast' keyword in fillna is deprecated" + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + expected = expected.fillna(np.nan, downcast=False) + + res = gb[c].transform(op, *args) + tm.assert_series_equal(expected, res) + res2 = getattr(gb[c], op)(*args) + tm.assert_series_equal(expected, res2) + + +def test_transform_with_non_scalar_group(): + # GH 10165 + cols = MultiIndex.from_tuples( + [ + ("syn", "A"), + ("foo", "A"), + ("non", "A"), + ("syn", "C"), + ("foo", "C"), + ("non", "C"), + ("syn", "T"), + ("foo", "T"), + ("non", "T"), + ("syn", "G"), + ("foo", "G"), + ("non", "G"), + ] + ) + df = DataFrame( + np.random.default_rng(2).integers(1, 10, (4, 12)), + columns=cols, + index=["A", "C", "G", "T"], + ) + + msg = "DataFrame.groupby with axis=1 is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + gb = df.groupby(axis=1, level=1) + msg = "transform must return a scalar value for each group.*" + with pytest.raises(ValueError, match=msg): + gb.transform(lambda z: z.div(z.sum(axis=1), axis=0)) + + +@pytest.mark.parametrize( + "cols,expected", + [ + ("a", Series([1, 1, 1], name="a")), + ( + ["a", "c"], + DataFrame({"a": [1, 1, 1], "c": [1, 1, 1]}), + ), + ], +) +@pytest.mark.parametrize("agg_func", ["count", "rank", "size"]) +def test_transform_numeric_ret(cols, expected, agg_func): + # GH#19200 and GH#27469 + df = DataFrame( + {"a": date_range("2018-01-01", periods=3), "b": range(3), "c": range(7, 10)} + ) + result = df.groupby("b")[cols].transform(agg_func) + + if agg_func == "rank": + expected = expected.astype("float") + elif agg_func == "size" and cols == ["a", "c"]: + # transform("size") returns a Series + expected = expected["a"].rename(None) + tm.assert_equal(result, expected) + + +def test_transform_ffill(): + # GH 24211 + data = [["a", 0.0], ["a", float("nan")], ["b", 1.0], ["b", float("nan")]] + df = DataFrame(data, columns=["key", "values"]) + result = df.groupby("key").transform("ffill") + expected = DataFrame({"values": [0.0, 0.0, 1.0, 1.0]}) + tm.assert_frame_equal(result, expected) + result = df.groupby("key")["values"].transform("ffill") + expected = Series([0.0, 0.0, 1.0, 1.0], name="values") + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("mix_groupings", [True, False]) +@pytest.mark.parametrize("as_series", [True, False]) +@pytest.mark.parametrize("val1,val2", [("foo", "bar"), (1, 2), (1.0, 2.0)]) +@pytest.mark.parametrize( + "fill_method,limit,exp_vals", + [ + ( + "ffill", + None, + [np.nan, np.nan, "val1", "val1", "val1", "val2", "val2", "val2"], + ), + ("ffill", 1, [np.nan, np.nan, "val1", "val1", np.nan, "val2", "val2", np.nan]), + ( + "bfill", + None, + ["val1", "val1", "val1", "val2", "val2", "val2", np.nan, np.nan], + ), + ("bfill", 1, [np.nan, "val1", "val1", np.nan, "val2", "val2", np.nan, np.nan]), + ], +) +def test_group_fill_methods( + mix_groupings, as_series, val1, val2, fill_method, limit, exp_vals +): + vals = [np.nan, np.nan, val1, np.nan, np.nan, val2, np.nan, np.nan] + _exp_vals = list(exp_vals) + # Overwrite placeholder values + for index, exp_val in enumerate(_exp_vals): + if exp_val == "val1": + _exp_vals[index] = val1 + elif exp_val == "val2": + _exp_vals[index] = val2 + + # Need to modify values and expectations depending on the + # Series / DataFrame that we ultimately want to generate + if mix_groupings: # ['a', 'b', 'a, 'b', ...] + keys = ["a", "b"] * len(vals) + + def interweave(list_obj): + temp = [] + for x in list_obj: + temp.extend([x, x]) + + return temp + + _exp_vals = interweave(_exp_vals) + vals = interweave(vals) + else: # ['a', 'a', 'a', ... 'b', 'b', 'b'] + keys = ["a"] * len(vals) + ["b"] * len(vals) + _exp_vals = _exp_vals * 2 + vals = vals * 2 + + df = DataFrame({"key": keys, "val": vals}) + if as_series: + result = getattr(df.groupby("key")["val"], fill_method)(limit=limit) + exp = Series(_exp_vals, name="val") + tm.assert_series_equal(result, exp) + else: + result = getattr(df.groupby("key"), fill_method)(limit=limit) + exp = DataFrame({"val": _exp_vals}) + tm.assert_frame_equal(result, exp) + + +@pytest.mark.parametrize("fill_method", ["ffill", "bfill"]) +def test_pad_stable_sorting(fill_method): + # GH 21207 + x = [0] * 20 + y = [np.nan] * 10 + [1] * 10 + + if fill_method == "bfill": + y = y[::-1] + + df = DataFrame({"x": x, "y": y}) + expected = df.drop("x", axis=1) + + result = getattr(df.groupby("x"), fill_method)() + + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "freq", + [ + None, + pytest.param( + "D", + marks=pytest.mark.xfail( + reason="GH#23918 before method uses freq in vectorized approach" + ), + ), + ], +) +@pytest.mark.parametrize("periods", [1, -1]) +@pytest.mark.parametrize("fill_method", ["ffill", "bfill", None]) +@pytest.mark.parametrize("limit", [None, 1]) +def test_pct_change(frame_or_series, freq, periods, fill_method, limit): + # GH 21200, 21621, 30463 + vals = [3, np.nan, np.nan, np.nan, 1, 2, 4, 10, np.nan, 4] + keys = ["a", "b"] + key_v = np.repeat(keys, len(vals)) + df = DataFrame({"key": key_v, "vals": vals * 2}) + + df_g = df + if fill_method is not None: + df_g = getattr(df.groupby("key"), fill_method)(limit=limit) + grp = df_g.groupby(df.key) + + expected = grp["vals"].obj / grp["vals"].shift(periods) - 1 + + gb = df.groupby("key") + + if frame_or_series is Series: + gb = gb["vals"] + else: + expected = expected.to_frame("vals") + + msg = ( + "The 'fill_method' keyword being not None and the 'limit' keyword in " + f"{type(gb).__name__}.pct_change are deprecated" + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + result = gb.pct_change( + periods=periods, fill_method=fill_method, limit=limit, freq=freq + ) + tm.assert_equal(result, expected) + + +@pytest.mark.parametrize( + "func, expected_status", + [ + ("ffill", ["shrt", "shrt", "lng", np.nan, "shrt", "ntrl", "ntrl"]), + ("bfill", ["shrt", "lng", "lng", "shrt", "shrt", "ntrl", np.nan]), + ], +) +def test_ffill_bfill_non_unique_multilevel(func, expected_status): + # GH 19437 + date = pd.to_datetime( + [ + "2018-01-01", + "2018-01-01", + "2018-01-01", + "2018-01-01", + "2018-01-02", + "2018-01-01", + "2018-01-02", + ] + ) + symbol = ["MSFT", "MSFT", "MSFT", "AAPL", "AAPL", "TSLA", "TSLA"] + status = ["shrt", np.nan, "lng", np.nan, "shrt", "ntrl", np.nan] + + df = DataFrame({"date": date, "symbol": symbol, "status": status}) + df = df.set_index(["date", "symbol"]) + result = getattr(df.groupby("symbol")["status"], func)() + + index = MultiIndex.from_tuples( + tuples=list(zip(*[date, symbol])), names=["date", "symbol"] + ) + expected = Series(expected_status, index=index, name="status") + + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("func", [np.any, np.all]) +def test_any_all_np_func(func): + # GH 20653 + df = DataFrame( + [["foo", True], [np.nan, True], ["foo", True]], columns=["key", "val"] + ) + + exp = Series([True, np.nan, True], name="val") + + msg = "using SeriesGroupBy.[any|all]" + with tm.assert_produces_warning(FutureWarning, match=msg): + res = df.groupby("key")["val"].transform(func) + tm.assert_series_equal(res, exp) + + +def test_groupby_transform_rename(): + # https://github.com/pandas-dev/pandas/issues/23461 + def demean_rename(x): + result = x - x.mean() + + if isinstance(x, Series): + return result + + result = result.rename(columns={c: f"{c}_demeaned" for c in result.columns}) + + return result + + df = DataFrame({"group": list("ababa"), "value": [1, 1, 1, 2, 2]}) + expected = DataFrame({"value": [-1.0 / 3, -0.5, -1.0 / 3, 0.5, 2.0 / 3]}) + + result = df.groupby("group").transform(demean_rename) + tm.assert_frame_equal(result, expected) + result_single = df.groupby("group").value.transform(demean_rename) + tm.assert_series_equal(result_single, expected["value"]) + + +@pytest.mark.parametrize("func", [min, max, np.min, np.max, "first", "last"]) +def test_groupby_transform_timezone_column(func): + # GH 24198 + ts = pd.to_datetime("now", utc=True).tz_convert("Asia/Singapore") + result = DataFrame({"end_time": [ts], "id": [1]}) + warn = FutureWarning if not isinstance(func, str) else None + msg = "using SeriesGroupBy.[min|max]" + with tm.assert_produces_warning(warn, match=msg): + result["max_end_time"] = result.groupby("id").end_time.transform(func) + expected = DataFrame([[ts, 1, ts]], columns=["end_time", "id", "max_end_time"]) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "func, values", + [ + ("idxmin", ["1/1/2011"] * 2 + ["1/3/2011"] * 7 + ["1/10/2011"]), + ("idxmax", ["1/2/2011"] * 2 + ["1/9/2011"] * 7 + ["1/10/2011"]), + ], +) +def test_groupby_transform_with_datetimes(func, values): + # GH 15306 + dates = date_range("1/1/2011", periods=10, freq="D") + + stocks = DataFrame({"price": np.arange(10.0)}, index=dates) + stocks["week_id"] = dates.isocalendar().week + + result = stocks.groupby(stocks["week_id"])["price"].transform(func) + + expected = Series( + data=pd.to_datetime(values).as_unit("ns"), index=dates, name="price" + ) + + tm.assert_series_equal(result, expected) + + +def test_groupby_transform_dtype(): + # GH 22243 + df = DataFrame({"a": [1], "val": [1.35]}) + + result = df["val"].transform(lambda x: x.map(lambda y: f"+{y}")) + expected1 = Series(["+1.35"], name="val") + tm.assert_series_equal(result, expected1) + + result = df.groupby("a")["val"].transform(lambda x: x.map(lambda y: f"+{y}")) + tm.assert_series_equal(result, expected1) + + result = df.groupby("a")["val"].transform(lambda x: x.map(lambda y: f"+({y})")) + expected2 = Series(["+(1.35)"], name="val") + tm.assert_series_equal(result, expected2) + + df["val"] = df["val"].astype(object) + result = df.groupby("a")["val"].transform(lambda x: x.map(lambda y: f"+{y}")) + tm.assert_series_equal(result, expected1) + + +@pytest.mark.parametrize("func", ["cumsum", "cumprod", "cummin", "cummax"]) +def test_transform_absent_categories(func): + # GH 16771 + # cython transforms with more groups than rows + x_vals = [1] + x_cats = range(2) + y = [1] + df = DataFrame({"x": Categorical(x_vals, x_cats), "y": y}) + result = getattr(df.y.groupby(df.x, observed=False), func)() + expected = df.y + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("func", ["ffill", "bfill", "shift"]) +@pytest.mark.parametrize("key, val", [("level", 0), ("by", Series([0]))]) +def test_ffill_not_in_axis(func, key, val): + # GH 21521 + df = DataFrame([[np.nan]]) + result = getattr(df.groupby(**{key: val}), func)() + expected = df + + tm.assert_frame_equal(result, expected) + + +def test_transform_invalid_name_raises(): + # GH#27486 + df = DataFrame({"a": [0, 1, 1, 2]}) + g = df.groupby(["a", "b", "b", "c"]) + with pytest.raises(ValueError, match="not a valid function name"): + g.transform("some_arbitrary_name") + + # method exists on the object, but is not a valid transformation/agg + assert hasattr(g, "aggregate") # make sure the method exists + with pytest.raises(ValueError, match="not a valid function name"): + g.transform("aggregate") + + # Test SeriesGroupBy + g = df["a"].groupby(["a", "b", "b", "c"]) + with pytest.raises(ValueError, match="not a valid function name"): + g.transform("some_arbitrary_name") + + +def test_transform_agg_by_name(request, reduction_func, frame_or_series): + func = reduction_func + + obj = DataFrame( + {"a": [0, 0, 0, 1, 1, 1], "b": range(6)}, + index=["A", "B", "C", "D", "E", "F"], + ) + if frame_or_series is Series: + obj = obj["a"] + + g = obj.groupby(np.repeat([0, 1], 3)) + + if func == "corrwith" and isinstance(obj, Series): # GH#32293 + # TODO: implement SeriesGroupBy.corrwith + assert not hasattr(g, func) + return + + args = get_groupby_method_args(reduction_func, obj) + result = g.transform(func, *args) + + # this is the *definition* of a transformation + tm.assert_index_equal(result.index, obj.index) + + if func not in ("ngroup", "size") and obj.ndim == 2: + # size/ngroup return a Series, unlike other transforms + tm.assert_index_equal(result.columns, obj.columns) + + # verify that values were broadcasted across each group + assert len(set(DataFrame(result).iloc[-3:, -1])) == 1 + + +def test_transform_lambda_with_datetimetz(): + # GH 27496 + df = DataFrame( + { + "time": [ + Timestamp("2010-07-15 03:14:45"), + Timestamp("2010-11-19 18:47:06"), + ], + "timezone": ["Etc/GMT+4", "US/Eastern"], + } + ) + result = df.groupby(["timezone"])["time"].transform( + lambda x: x.dt.tz_localize(x.name) + ) + expected = Series( + [ + Timestamp("2010-07-15 03:14:45", tz="Etc/GMT+4"), + Timestamp("2010-11-19 18:47:06", tz="US/Eastern"), + ], + name="time", + ) + tm.assert_series_equal(result, expected) + + +def test_transform_fastpath_raises(): + # GH#29631 case where fastpath defined in groupby.generic _choose_path + # raises, but slow_path does not + + df = DataFrame({"A": [1, 1, 2, 2], "B": [1, -1, 1, 2]}) + gb = df.groupby("A") + + def func(grp): + # we want a function such that func(frame) fails but func.apply(frame) + # works + if grp.ndim == 2: + # Ensure that fast_path fails + raise NotImplementedError("Don't cross the streams") + return grp * 2 + + # Check that the fastpath raises, see _transform_general + obj = gb._obj_with_exclusions + gen = gb._grouper.get_iterator(obj, axis=gb.axis) + fast_path, slow_path = gb._define_paths(func) + _, group = next(gen) + + with pytest.raises(NotImplementedError, match="Don't cross the streams"): + fast_path(group) + + result = gb.transform(func) + + expected = DataFrame([2, -2, 2, 4], columns=["B"]) + tm.assert_frame_equal(result, expected) + + +def test_transform_lambda_indexing(): + # GH 7883 + df = DataFrame( + { + "A": ["foo", "bar", "foo", "bar", "foo", "flux", "foo", "flux"], + "B": ["one", "one", "two", "three", "two", "six", "five", "three"], + "C": range(8), + "D": range(8), + "E": range(8), + } + ) + df = df.set_index(["A", "B"]) + df = df.sort_index() + result = df.groupby(level="A").transform(lambda x: x.iloc[-1]) + expected = DataFrame( + { + "C": [3, 3, 7, 7, 4, 4, 4, 4], + "D": [3, 3, 7, 7, 4, 4, 4, 4], + "E": [3, 3, 7, 7, 4, 4, 4, 4], + }, + index=MultiIndex.from_tuples( + [ + ("bar", "one"), + ("bar", "three"), + ("flux", "six"), + ("flux", "three"), + ("foo", "five"), + ("foo", "one"), + ("foo", "two"), + ("foo", "two"), + ], + names=["A", "B"], + ), + ) + tm.assert_frame_equal(result, expected) + + +def test_categorical_and_not_categorical_key(observed): + # Checks that groupby-transform, when grouping by both a categorical + # and a non-categorical key, doesn't try to expand the output to include + # non-observed categories but instead matches the input shape. + # GH 32494 + df_with_categorical = DataFrame( + { + "A": Categorical(["a", "b", "a"], categories=["a", "b", "c"]), + "B": [1, 2, 3], + "C": ["a", "b", "a"], + } + ) + df_without_categorical = DataFrame( + {"A": ["a", "b", "a"], "B": [1, 2, 3], "C": ["a", "b", "a"]} + ) + + # DataFrame case + result = df_with_categorical.groupby(["A", "C"], observed=observed).transform("sum") + expected = df_without_categorical.groupby(["A", "C"]).transform("sum") + tm.assert_frame_equal(result, expected) + expected_explicit = DataFrame({"B": [4, 2, 4]}) + tm.assert_frame_equal(result, expected_explicit) + + # Series case + result = df_with_categorical.groupby(["A", "C"], observed=observed)["B"].transform( + "sum" + ) + expected = df_without_categorical.groupby(["A", "C"])["B"].transform("sum") + tm.assert_series_equal(result, expected) + expected_explicit = Series([4, 2, 4], name="B") + tm.assert_series_equal(result, expected_explicit) + + +def test_string_rank_grouping(): + # GH 19354 + df = DataFrame({"A": [1, 1, 2], "B": [1, 2, 3]}) + result = df.groupby("A").transform("rank") + expected = DataFrame({"B": [1.0, 2.0, 1.0]}) + tm.assert_frame_equal(result, expected) + + +def test_transform_cumcount(): + # GH 27472 + df = DataFrame({"a": [0, 0, 0, 1, 1, 1], "b": range(6)}) + grp = df.groupby(np.repeat([0, 1], 3)) + + result = grp.cumcount() + expected = Series([0, 1, 2, 0, 1, 2]) + tm.assert_series_equal(result, expected) + + result = grp.transform("cumcount") + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("keys", [["A1"], ["A1", "A2"]]) +def test_null_group_lambda_self(sort, dropna, keys): + # GH 17093 + size = 50 + nulls1 = np.random.default_rng(2).choice([False, True], size) + nulls2 = np.random.default_rng(2).choice([False, True], size) + # Whether a group contains a null value or not + nulls_grouper = nulls1 if len(keys) == 1 else nulls1 | nulls2 + + a1 = np.random.default_rng(2).integers(0, 5, size=size).astype(float) + a1[nulls1] = np.nan + a2 = np.random.default_rng(2).integers(0, 5, size=size).astype(float) + a2[nulls2] = np.nan + values = np.random.default_rng(2).integers(0, 5, size=a1.shape) + df = DataFrame({"A1": a1, "A2": a2, "B": values}) + + expected_values = values + if dropna and nulls_grouper.any(): + expected_values = expected_values.astype(float) + expected_values[nulls_grouper] = np.nan + expected = DataFrame(expected_values, columns=["B"]) + + gb = df.groupby(keys, dropna=dropna, sort=sort) + result = gb[["B"]].transform(lambda x: x) + tm.assert_frame_equal(result, expected) + + +def test_null_group_str_reducer(request, dropna, reduction_func): + # GH 17093 + if reduction_func == "corrwith": + msg = "incorrectly raises" + request.applymarker(pytest.mark.xfail(reason=msg)) + + index = [1, 2, 3, 4] # test transform preserves non-standard index + df = DataFrame({"A": [1, 1, np.nan, np.nan], "B": [1, 2, 2, 3]}, index=index) + gb = df.groupby("A", dropna=dropna) + + args = get_groupby_method_args(reduction_func, df) + + # Manually handle reducers that don't fit the generic pattern + # Set expected with dropna=False, then replace if necessary + if reduction_func == "first": + expected = DataFrame({"B": [1, 1, 2, 2]}, index=index) + elif reduction_func == "last": + expected = DataFrame({"B": [2, 2, 3, 3]}, index=index) + elif reduction_func == "nth": + expected = DataFrame({"B": [1, 1, 2, 2]}, index=index) + elif reduction_func == "size": + expected = Series([2, 2, 2, 2], index=index) + elif reduction_func == "corrwith": + expected = DataFrame({"B": [1.0, 1.0, 1.0, 1.0]}, index=index) + else: + expected_gb = df.groupby("A", dropna=False) + buffer = [] + for idx, group in expected_gb: + res = getattr(group["B"], reduction_func)() + buffer.append(Series(res, index=group.index)) + expected = concat(buffer).to_frame("B") + if dropna: + dtype = object if reduction_func in ("any", "all") else float + expected = expected.astype(dtype) + if expected.ndim == 2: + expected.iloc[[2, 3], 0] = np.nan + else: + expected.iloc[[2, 3]] = np.nan + + result = gb.transform(reduction_func, *args) + tm.assert_equal(result, expected) + + +def test_null_group_str_transformer(request, dropna, transformation_func): + # GH 17093 + df = DataFrame({"A": [1, 1, np.nan], "B": [1, 2, 2]}, index=[1, 2, 3]) + args = get_groupby_method_args(transformation_func, df) + gb = df.groupby("A", dropna=dropna) + + buffer = [] + for k, (idx, group) in enumerate(gb): + if transformation_func == "cumcount": + # DataFrame has no cumcount method + res = DataFrame({"B": range(len(group))}, index=group.index) + elif transformation_func == "ngroup": + res = DataFrame(len(group) * [k], index=group.index, columns=["B"]) + else: + res = getattr(group[["B"]], transformation_func)(*args) + buffer.append(res) + if dropna: + dtype = object if transformation_func in ("any", "all") else None + buffer.append(DataFrame([[np.nan]], index=[3], dtype=dtype, columns=["B"])) + expected = concat(buffer) + + if transformation_func in ("cumcount", "ngroup"): + # ngroup/cumcount always returns a Series as it counts the groups, not values + expected = expected["B"].rename(None) + + if transformation_func == "pct_change" and not dropna: + warn = FutureWarning + msg = ( + "The default fill_method='ffill' in DataFrameGroupBy.pct_change " + "is deprecated" + ) + elif transformation_func == "fillna": + warn = FutureWarning + msg = "DataFrameGroupBy.fillna is deprecated" + else: + warn = None + msg = "" + with tm.assert_produces_warning(warn, match=msg): + result = gb.transform(transformation_func, *args) + + tm.assert_equal(result, expected) + + +def test_null_group_str_reducer_series(request, dropna, reduction_func): + # GH 17093 + index = [1, 2, 3, 4] # test transform preserves non-standard index + ser = Series([1, 2, 2, 3], index=index) + gb = ser.groupby([1, 1, np.nan, np.nan], dropna=dropna) + + if reduction_func == "corrwith": + # corrwith not implemented for SeriesGroupBy + assert not hasattr(gb, reduction_func) + return + + args = get_groupby_method_args(reduction_func, ser) + + # Manually handle reducers that don't fit the generic pattern + # Set expected with dropna=False, then replace if necessary + if reduction_func == "first": + expected = Series([1, 1, 2, 2], index=index) + elif reduction_func == "last": + expected = Series([2, 2, 3, 3], index=index) + elif reduction_func == "nth": + expected = Series([1, 1, 2, 2], index=index) + elif reduction_func == "size": + expected = Series([2, 2, 2, 2], index=index) + elif reduction_func == "corrwith": + expected = Series([1, 1, 2, 2], index=index) + else: + expected_gb = ser.groupby([1, 1, np.nan, np.nan], dropna=False) + buffer = [] + for idx, group in expected_gb: + res = getattr(group, reduction_func)() + buffer.append(Series(res, index=group.index)) + expected = concat(buffer) + if dropna: + dtype = object if reduction_func in ("any", "all") else float + expected = expected.astype(dtype) + expected.iloc[[2, 3]] = np.nan + + result = gb.transform(reduction_func, *args) + tm.assert_series_equal(result, expected) + + +def test_null_group_str_transformer_series(dropna, transformation_func): + # GH 17093 + ser = Series([1, 2, 2], index=[1, 2, 3]) + args = get_groupby_method_args(transformation_func, ser) + gb = ser.groupby([1, 1, np.nan], dropna=dropna) + + buffer = [] + for k, (idx, group) in enumerate(gb): + if transformation_func == "cumcount": + # Series has no cumcount method + res = Series(range(len(group)), index=group.index) + elif transformation_func == "ngroup": + res = Series(k, index=group.index) + else: + res = getattr(group, transformation_func)(*args) + buffer.append(res) + if dropna: + dtype = object if transformation_func in ("any", "all") else None + buffer.append(Series([np.nan], index=[3], dtype=dtype)) + expected = concat(buffer) + + warn = FutureWarning if transformation_func == "fillna" else None + msg = "SeriesGroupBy.fillna is deprecated" + with tm.assert_produces_warning(warn, match=msg): + result = gb.transform(transformation_func, *args) + + tm.assert_equal(result, expected) + + +@pytest.mark.parametrize( + "func, expected_values", + [ + (Series.sort_values, [5, 4, 3, 2, 1]), + (lambda x: x.head(1), [5.0, np.nan, 3, 2, np.nan]), + ], +) +@pytest.mark.parametrize("keys", [["a1"], ["a1", "a2"]]) +@pytest.mark.parametrize("keys_in_index", [True, False]) +def test_transform_aligns(func, frame_or_series, expected_values, keys, keys_in_index): + # GH#45648 - transform should align with the input's index + df = DataFrame({"a1": [1, 1, 3, 2, 2], "b": [5, 4, 3, 2, 1]}) + if "a2" in keys: + df["a2"] = df["a1"] + if keys_in_index: + df = df.set_index(keys, append=True) + + gb = df.groupby(keys) + if frame_or_series is Series: + gb = gb["b"] + + result = gb.transform(func) + expected = DataFrame({"b": expected_values}, index=df.index) + if frame_or_series is Series: + expected = expected["b"] + tm.assert_equal(result, expected) + + +@pytest.mark.parametrize("keys", ["A", ["A", "B"]]) +def test_as_index_no_change(keys, df, groupby_func): + # GH#49834 - as_index should have no impact on DataFrameGroupBy.transform + if keys == "A": + # Column B is string dtype; will fail on some ops + df = df.drop(columns="B") + args = get_groupby_method_args(groupby_func, df) + gb_as_index_true = df.groupby(keys, as_index=True) + gb_as_index_false = df.groupby(keys, as_index=False) + warn = FutureWarning if groupby_func == "fillna" else None + msg = "DataFrameGroupBy.fillna is deprecated" + with tm.assert_produces_warning(warn, match=msg): + result = gb_as_index_true.transform(groupby_func, *args) + with tm.assert_produces_warning(warn, match=msg): + expected = gb_as_index_false.transform(groupby_func, *args) + tm.assert_equal(result, expected) + + +@pytest.mark.parametrize("how", ["idxmax", "idxmin"]) +@pytest.mark.parametrize("numeric_only", [True, False]) +def test_idxmin_idxmax_transform_args(how, skipna, numeric_only): + # GH#55268 - ensure *args are passed through when calling transform + df = DataFrame({"a": [1, 1, 1, 2], "b": [3.0, 4.0, np.nan, 6.0], "c": list("abcd")}) + gb = df.groupby("a") + msg = f"'axis' keyword in DataFrameGroupBy.{how} is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = gb.transform(how, 0, skipna, numeric_only) + warn = None if skipna else FutureWarning + msg = f"The behavior of DataFrameGroupBy.{how} with .* any-NA and skipna=False" + with tm.assert_produces_warning(warn, match=msg): + expected = gb.transform(how, skipna=skipna, numeric_only=numeric_only) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/base_class/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/base_class/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/base_class/test_constructors.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/base_class/test_constructors.py new file mode 100644 index 0000000000000000000000000000000000000000..dcf0165ead6c0edb2073ecd0c17cdd7da37daf78 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/base_class/test_constructors.py @@ -0,0 +1,78 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + Index, + MultiIndex, + Series, +) +import pandas._testing as tm + + +class TestIndexConstructor: + # Tests for the Index constructor, specifically for cases that do + # not return a subclass + + @pytest.mark.parametrize("value", [1, np.int64(1)]) + def test_constructor_corner(self, value): + # corner case + msg = ( + r"Index\(\.\.\.\) must be called with a collection of some " + f"kind, {value} was passed" + ) + with pytest.raises(TypeError, match=msg): + Index(value) + + @pytest.mark.parametrize("index_vals", [[("A", 1), "B"], ["B", ("A", 1)]]) + def test_construction_list_mixed_tuples(self, index_vals): + # see gh-10697: if we are constructing from a mixed list of tuples, + # make sure that we are independent of the sorting order. + index = Index(index_vals) + assert isinstance(index, Index) + assert not isinstance(index, MultiIndex) + + def test_constructor_cast(self): + msg = "could not convert string to float" + with pytest.raises(ValueError, match=msg): + Index(["a", "b", "c"], dtype=float) + + @pytest.mark.parametrize("tuple_list", [[()], [(), ()]]) + def test_construct_empty_tuples(self, tuple_list): + # GH #45608 + result = Index(tuple_list) + expected = MultiIndex.from_tuples(tuple_list) + + tm.assert_index_equal(result, expected) + + def test_index_string_inference(self): + # GH#54430 + expected = Index(["a", "b"], dtype=pd.StringDtype(na_value=np.nan)) + with pd.option_context("future.infer_string", True): + ser = Index(["a", "b"]) + tm.assert_index_equal(ser, expected) + + expected = Index(["a", 1], dtype="object") + with pd.option_context("future.infer_string", True): + ser = Index(["a", 1]) + tm.assert_index_equal(ser, expected) + + def test_inference_on_pandas_objects(self): + # GH#56012 + idx = Index([pd.Timestamp("2019-12-31")], dtype=object) + with tm.assert_produces_warning(FutureWarning, match="Dtype inference"): + result = Index(idx) + assert result.dtype != np.object_ + + ser = Series([pd.Timestamp("2019-12-31")], dtype=object) + + with tm.assert_produces_warning(FutureWarning, match="Dtype inference"): + result = Index(ser) + assert result.dtype != np.object_ + + def test_constructor_not_read_only(self): + # GH#57130 + ser = Series([1, 2], dtype=object) + with pd.option_context("mode.copy_on_write", True): + idx = Index(ser) + assert idx._values.flags.writeable diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/base_class/test_formats.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/base_class/test_formats.py new file mode 100644 index 0000000000000000000000000000000000000000..955e3be107f7514b597f1a961dfc548367613c46 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/base_class/test_formats.py @@ -0,0 +1,163 @@ +import numpy as np +import pytest + +from pandas._config import using_string_dtype +import pandas._config.config as cf + +from pandas import Index +import pandas._testing as tm + + +class TestIndexRendering: + def test_repr_is_valid_construction_code(self): + # for the case of Index, where the repr is traditional rather than + # stylized + idx = Index(["a", "b"]) + res = eval(repr(idx)) + tm.assert_index_equal(res, idx) + + @pytest.mark.xfail(using_string_dtype(), reason="repr different") + @pytest.mark.parametrize( + "index,expected", + [ + # ASCII + # short + ( + Index(["a", "bb", "ccc"]), + """Index(['a', 'bb', 'ccc'], dtype='object')""", + ), + # multiple lines + ( + Index(["a", "bb", "ccc"] * 10), + "Index(['a', 'bb', 'ccc', 'a', 'bb', 'ccc', 'a', " + "'bb', 'ccc', 'a', 'bb', 'ccc',\n" + " 'a', 'bb', 'ccc', 'a', 'bb', 'ccc', 'a', " + "'bb', 'ccc', 'a', 'bb', 'ccc',\n" + " 'a', 'bb', 'ccc', 'a', 'bb', 'ccc'],\n" + " dtype='object')", + ), + # truncated + ( + Index(["a", "bb", "ccc"] * 100), + "Index(['a', 'bb', 'ccc', 'a', 'bb', 'ccc', 'a', 'bb', 'ccc', 'a',\n" + " ...\n" + " 'ccc', 'a', 'bb', 'ccc', 'a', 'bb', 'ccc', 'a', 'bb', 'ccc'],\n" + " dtype='object', length=300)", + ), + # Non-ASCII + # short + ( + Index(["あ", "いい", "ううう"]), + """Index(['あ', 'いい', 'ううう'], dtype='object')""", + ), + # multiple lines + ( + Index(["あ", "いい", "ううう"] * 10), + ( + "Index(['あ', 'いい', 'ううう', 'あ', 'いい', 'ううう', " + "'あ', 'いい', 'ううう', 'あ', 'いい', 'ううう',\n" + " 'あ', 'いい', 'ううう', 'あ', 'いい', 'ううう', " + "'あ', 'いい', 'ううう', 'あ', 'いい', 'ううう',\n" + " 'あ', 'いい', 'ううう', 'あ', 'いい', " + "'ううう'],\n" + " dtype='object')" + ), + ), + # truncated + ( + Index(["あ", "いい", "ううう"] * 100), + ( + "Index(['あ', 'いい', 'ううう', 'あ', 'いい', 'ううう', " + "'あ', 'いい', 'ううう', 'あ',\n" + " ...\n" + " 'ううう', 'あ', 'いい', 'ううう', 'あ', 'いい', " + "'ううう', 'あ', 'いい', 'ううう'],\n" + " dtype='object', length=300)" + ), + ), + ], + ) + def test_string_index_repr(self, index, expected): + result = repr(index) + assert result == expected + + @pytest.mark.xfail(using_string_dtype(), reason="repr different") + @pytest.mark.parametrize( + "index,expected", + [ + # short + ( + Index(["あ", "いい", "ううう"]), + ("Index(['あ', 'いい', 'ううう'], dtype='object')"), + ), + # multiple lines + ( + Index(["あ", "いい", "ううう"] * 10), + ( + "Index(['あ', 'いい', 'ううう', 'あ', 'いい', " + "'ううう', 'あ', 'いい', 'ううう',\n" + " 'あ', 'いい', 'ううう', 'あ', 'いい', " + "'ううう', 'あ', 'いい', 'ううう',\n" + " 'あ', 'いい', 'ううう', 'あ', 'いい', " + "'ううう', 'あ', 'いい', 'ううう',\n" + " 'あ', 'いい', 'ううう'],\n" + " dtype='object')" + "" + ), + ), + # truncated + ( + Index(["あ", "いい", "ううう"] * 100), + ( + "Index(['あ', 'いい', 'ううう', 'あ', 'いい', " + "'ううう', 'あ', 'いい', 'ううう',\n" + " 'あ',\n" + " ...\n" + " 'ううう', 'あ', 'いい', 'ううう', 'あ', " + "'いい', 'ううう', 'あ', 'いい',\n" + " 'ううう'],\n" + " dtype='object', length=300)" + ), + ), + ], + ) + def test_string_index_repr_with_unicode_option(self, index, expected): + # Enable Unicode option ----------------------------------------- + with cf.option_context("display.unicode.east_asian_width", True): + result = repr(index) + assert result == expected + + def test_repr_summary(self): + with cf.option_context("display.max_seq_items", 10): + result = repr(Index(np.arange(1000))) + assert len(result) < 200 + assert "..." in result + + def test_summary_bug(self): + # GH#3869 + ind = Index(["{other}%s", "~:{range}:0"], name="A") + result = ind._summary() + # shouldn't be formatted accidentally. + assert "~:{range}:0" in result + assert "{other}%s" in result + + def test_index_repr_bool_nan(self): + # GH32146 + arr = Index([True, False, np.nan], dtype=object) + msg = "Index.format is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + exp1 = arr.format() + out1 = ["True", "False", "NaN"] + assert out1 == exp1 + + exp2 = repr(arr) + out2 = "Index([True, False, nan], dtype='object')" + assert out2 == exp2 + + def test_format_different_scalar_lengths(self): + # GH#35439 + idx = Index(["aaaaaaaaa", "b"]) + expected = ["aaaaaaaaa", "b"] + msg = r"Index\.format is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + assert idx.format() == expected diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/base_class/test_indexing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/base_class/test_indexing.py new file mode 100644 index 0000000000000000000000000000000000000000..2988fa7d1baa1e0bc0f6cc4b6dc32e5d12f332cf --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/base_class/test_indexing.py @@ -0,0 +1,104 @@ +import numpy as np +import pytest + +from pandas._libs import index as libindex + +import pandas as pd +from pandas import ( + Index, + NaT, +) +import pandas._testing as tm + + +class TestGetSliceBounds: + @pytest.mark.parametrize("side, expected", [("left", 4), ("right", 5)]) + def test_get_slice_bounds_within(self, side, expected): + index = Index(list("abcdef")) + result = index.get_slice_bound("e", side=side) + assert result == expected + + @pytest.mark.parametrize("side", ["left", "right"]) + @pytest.mark.parametrize( + "data, bound, expected", [(list("abcdef"), "x", 6), (list("bcdefg"), "a", 0)] + ) + def test_get_slice_bounds_outside(self, side, expected, data, bound): + index = Index(data) + result = index.get_slice_bound(bound, side=side) + assert result == expected + + def test_get_slice_bounds_invalid_side(self): + with pytest.raises(ValueError, match="Invalid value for side kwarg"): + Index([]).get_slice_bound("a", side="middle") + + +class TestGetIndexerNonUnique: + def test_get_indexer_non_unique_dtype_mismatch(self): + # GH#25459 + indexes, missing = Index(["A", "B"]).get_indexer_non_unique(Index([0])) + tm.assert_numpy_array_equal(np.array([-1], dtype=np.intp), indexes) + tm.assert_numpy_array_equal(np.array([0], dtype=np.intp), missing) + + @pytest.mark.parametrize( + "idx_values,idx_non_unique", + [ + ([np.nan, 100, 200, 100], [np.nan, 100]), + ([np.nan, 100.0, 200.0, 100.0], [np.nan, 100.0]), + ], + ) + def test_get_indexer_non_unique_int_index(self, idx_values, idx_non_unique): + indexes, missing = Index(idx_values).get_indexer_non_unique(Index([np.nan])) + tm.assert_numpy_array_equal(np.array([0], dtype=np.intp), indexes) + tm.assert_numpy_array_equal(np.array([], dtype=np.intp), missing) + + indexes, missing = Index(idx_values).get_indexer_non_unique( + Index(idx_non_unique) + ) + tm.assert_numpy_array_equal(np.array([0, 1, 3], dtype=np.intp), indexes) + tm.assert_numpy_array_equal(np.array([], dtype=np.intp), missing) + + +class TestGetLoc: + @pytest.mark.slow # to_flat_index takes a while + def test_get_loc_tuple_monotonic_above_size_cutoff(self, monkeypatch): + # Go through the libindex path for which using + # _bin_search vs ndarray.searchsorted makes a difference + + with monkeypatch.context(): + monkeypatch.setattr(libindex, "_SIZE_CUTOFF", 100) + lev = list("ABCD") + dti = pd.date_range("2016-01-01", periods=10) + + mi = pd.MultiIndex.from_product([lev, range(5), dti]) + oidx = mi.to_flat_index() + + loc = len(oidx) // 2 + tup = oidx[loc] + + res = oidx.get_loc(tup) + assert res == loc + + def test_get_loc_nan_object_dtype_nonmonotonic_nonunique(self): + # case that goes through _maybe_get_bool_indexer + idx = Index(["foo", np.nan, None, "foo", 1.0, None], dtype=object) + + # we dont raise KeyError on nan + res = idx.get_loc(np.nan) + assert res == 1 + + # we only match on None, not on np.nan + res = idx.get_loc(None) + expected = np.array([False, False, True, False, False, True]) + tm.assert_numpy_array_equal(res, expected) + + # we don't match at all on mismatched NA + with pytest.raises(KeyError, match="NaT"): + idx.get_loc(NaT) + + +def test_getitem_boolean_ea_indexer(): + # GH#45806 + ser = pd.Series([True, False, pd.NA], dtype="boolean") + result = ser.index[ser] + expected = Index([0]) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/base_class/test_pickle.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/base_class/test_pickle.py new file mode 100644 index 0000000000000000000000000000000000000000..c670921decb78808fa54a35c45e3d2d15ab57a67 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/base_class/test_pickle.py @@ -0,0 +1,11 @@ +from pandas import Index +import pandas._testing as tm + + +def test_pickle_preserves_object_dtype(): + # GH#43188, GH#43155 don't infer numeric dtype + index = Index([1, 2, 3], dtype=object) + + result = tm.round_trip_pickle(index) + assert result.dtype == object + tm.assert_index_equal(index, result) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/base_class/test_reshape.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/base_class/test_reshape.py new file mode 100644 index 0000000000000000000000000000000000000000..548f32fd533232c8a930f2a0763394e76f196a43 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/base_class/test_reshape.py @@ -0,0 +1,97 @@ +""" +Tests for ndarray-like method on the base Index class +""" +import numpy as np +import pytest + +import pandas as pd +from pandas import Index +import pandas._testing as tm + + +class TestReshape: + def test_repeat(self): + repeats = 2 + index = Index([1, 2, 3]) + expected = Index([1, 1, 2, 2, 3, 3]) + + result = index.repeat(repeats) + tm.assert_index_equal(result, expected) + + def test_insert(self): + # GH 7256 + # validate neg/pos inserts + result = Index(["b", "c", "d"]) + + # test 0th element + tm.assert_index_equal(Index(["a", "b", "c", "d"]), result.insert(0, "a")) + + # test Nth element that follows Python list behavior + tm.assert_index_equal(Index(["b", "c", "e", "d"]), result.insert(-1, "e")) + + # test loc +/- neq (0, -1) + tm.assert_index_equal(result.insert(1, "z"), result.insert(-2, "z")) + + # test empty + null_index = Index([]) + tm.assert_index_equal(Index(["a"]), null_index.insert(0, "a")) + + def test_insert_missing(self, request, nulls_fixture, using_infer_string): + if using_infer_string and nulls_fixture is pd.NA: + request.applymarker(pytest.mark.xfail(reason="TODO(infer_string)")) + # GH#22295 + # test there is no mangling of NA values + expected = Index(["a", nulls_fixture, "b", "c"], dtype=object) + result = Index(list("abc"), dtype=object).insert( + 1, Index([nulls_fixture], dtype=object) + ) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "val", [(1, 2), np.datetime64("2019-12-31"), np.timedelta64(1, "D")] + ) + @pytest.mark.parametrize("loc", [-1, 2]) + def test_insert_datetime_into_object(self, loc, val): + # GH#44509 + idx = Index(["1", "2", "3"]) + result = idx.insert(loc, val) + expected = Index(["1", "2", val, "3"]) + tm.assert_index_equal(result, expected) + assert type(expected[2]) is type(val) + + def test_insert_none_into_string_numpy(self, string_dtype_no_object): + # GH#55365 + index = Index(["a", "b", "c"], dtype=string_dtype_no_object) + result = index.insert(-1, None) + expected = Index(["a", "b", None, "c"], dtype=string_dtype_no_object) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "pos,expected", + [ + (0, Index(["b", "c", "d"], name="index")), + (-1, Index(["a", "b", "c"], name="index")), + ], + ) + def test_delete(self, pos, expected): + index = Index(["a", "b", "c", "d"], name="index") + result = index.delete(pos) + tm.assert_index_equal(result, expected) + assert result.name == expected.name + + def test_delete_raises(self): + index = Index(["a", "b", "c", "d"], name="index") + msg = "index 5 is out of bounds for axis 0 with size 4" + with pytest.raises(IndexError, match=msg): + index.delete(5) + + def test_append_multiple(self): + index = Index(["a", "b", "c", "d", "e", "f"]) + + foos = [index[:2], index[2:4], index[4:]] + result = foos[0].append(foos[1:]) + tm.assert_index_equal(result, index) + + # empty + result = index.append([]) + tm.assert_index_equal(result, index) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/base_class/test_setops.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/base_class/test_setops.py new file mode 100644 index 0000000000000000000000000000000000000000..3ef3f3ad4d3a20bd2e6303d781590396cbc00ae0 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/base_class/test_setops.py @@ -0,0 +1,266 @@ +from datetime import datetime + +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + Index, + Series, +) +import pandas._testing as tm +from pandas.core.algorithms import safe_sort + + +def equal_contents(arr1, arr2) -> bool: + """ + Checks if the set of unique elements of arr1 and arr2 are equivalent. + """ + return frozenset(arr1) == frozenset(arr2) + + +class TestIndexSetOps: + @pytest.mark.parametrize( + "method", ["union", "intersection", "difference", "symmetric_difference"] + ) + def test_setops_sort_validation(self, method): + idx1 = Index(["a", "b"]) + idx2 = Index(["b", "c"]) + + with pytest.raises(ValueError, match="The 'sort' keyword only takes"): + getattr(idx1, method)(idx2, sort=2) + + # sort=True is supported as of GH#?? + getattr(idx1, method)(idx2, sort=True) + + def test_setops_preserve_object_dtype(self): + idx = Index([1, 2, 3], dtype=object) + result = idx.intersection(idx[1:]) + expected = idx[1:] + tm.assert_index_equal(result, expected) + + # if other is not monotonic increasing, intersection goes through + # a different route + result = idx.intersection(idx[1:][::-1]) + tm.assert_index_equal(result, expected) + + result = idx._union(idx[1:], sort=None) + expected = idx + tm.assert_numpy_array_equal(result, expected.values) + + result = idx.union(idx[1:], sort=None) + tm.assert_index_equal(result, expected) + + # if other is not monotonic increasing, _union goes through + # a different route + result = idx._union(idx[1:][::-1], sort=None) + tm.assert_numpy_array_equal(result, expected.values) + + result = idx.union(idx[1:][::-1], sort=None) + tm.assert_index_equal(result, expected) + + def test_union_base(self): + index = Index([0, "a", 1, "b", 2, "c"]) + first = index[3:] + second = index[:5] + + result = first.union(second) + + expected = Index([0, 1, 2, "a", "b", "c"]) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("klass", [np.array, Series, list]) + def test_union_different_type_base(self, klass): + # GH 10149 + index = Index([0, "a", 1, "b", 2, "c"]) + first = index[3:] + second = index[:5] + + result = first.union(klass(second.values)) + + assert equal_contents(result, index) + + def test_union_sort_other_incomparable(self): + # https://github.com/pandas-dev/pandas/issues/24959 + idx = Index([1, pd.Timestamp("2000")]) + # default (sort=None) + with tm.assert_produces_warning(RuntimeWarning): + result = idx.union(idx[:1]) + + tm.assert_index_equal(result, idx) + + # sort=None + with tm.assert_produces_warning(RuntimeWarning): + result = idx.union(idx[:1], sort=None) + tm.assert_index_equal(result, idx) + + # sort=False + result = idx.union(idx[:1], sort=False) + tm.assert_index_equal(result, idx) + + def test_union_sort_other_incomparable_true(self): + idx = Index([1, pd.Timestamp("2000")]) + with pytest.raises(TypeError, match=".*"): + idx.union(idx[:1], sort=True) + + def test_intersection_equal_sort_true(self): + idx = Index(["c", "a", "b"]) + sorted_ = Index(["a", "b", "c"]) + tm.assert_index_equal(idx.intersection(idx, sort=True), sorted_) + + def test_intersection_base(self, sort): + # (same results for py2 and py3 but sortedness not tested elsewhere) + index = Index([0, "a", 1, "b", 2, "c"]) + first = index[:5] + second = index[:3] + + expected = Index([0, 1, "a"]) if sort is None else Index([0, "a", 1]) + result = first.intersection(second, sort=sort) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("klass", [np.array, Series, list]) + def test_intersection_different_type_base(self, klass, sort): + # GH 10149 + index = Index([0, "a", 1, "b", 2, "c"]) + first = index[:5] + second = index[:3] + + result = first.intersection(klass(second.values), sort=sort) + assert equal_contents(result, second) + + def test_intersection_nosort(self): + result = Index(["c", "b", "a"]).intersection(["b", "a"]) + expected = Index(["b", "a"]) + tm.assert_index_equal(result, expected) + + def test_intersection_equal_sort(self): + idx = Index(["c", "a", "b"]) + tm.assert_index_equal(idx.intersection(idx, sort=False), idx) + tm.assert_index_equal(idx.intersection(idx, sort=None), idx) + + def test_intersection_str_dates(self, sort): + dt_dates = [datetime(2012, 2, 9), datetime(2012, 2, 22)] + + i1 = Index(dt_dates, dtype=object) + i2 = Index(["aa"], dtype=object) + result = i2.intersection(i1, sort=sort) + + assert len(result) == 0 + + @pytest.mark.parametrize( + "index2,expected_arr", + [(Index(["B", "D"]), ["B"]), (Index(["B", "D", "A"]), ["A", "B"])], + ) + def test_intersection_non_monotonic_non_unique(self, index2, expected_arr, sort): + # non-monotonic non-unique + index1 = Index(["A", "B", "A", "C"]) + expected = Index(expected_arr) + result = index1.intersection(index2, sort=sort) + if sort is None: + expected = expected.sort_values() + tm.assert_index_equal(result, expected) + + def test_difference_base(self, sort): + # (same results for py2 and py3 but sortedness not tested elsewhere) + index = Index([0, "a", 1, "b", 2, "c"]) + first = index[:4] + second = index[3:] + + result = first.difference(second, sort) + expected = Index([0, "a", 1]) + if sort is None: + expected = Index(safe_sort(expected)) + tm.assert_index_equal(result, expected) + + def test_symmetric_difference(self): + # (same results for py2 and py3 but sortedness not tested elsewhere) + index = Index([0, "a", 1, "b", 2, "c"]) + first = index[:4] + second = index[3:] + + result = first.symmetric_difference(second) + expected = Index([0, 1, 2, "a", "c"]) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "method,expected,sort", + [ + ( + "intersection", + np.array( + [(1, "A"), (2, "A"), (1, "B"), (2, "B")], + dtype=[("num", int), ("let", "S1")], + ), + False, + ), + ( + "intersection", + np.array( + [(1, "A"), (1, "B"), (2, "A"), (2, "B")], + dtype=[("num", int), ("let", "S1")], + ), + None, + ), + ( + "union", + np.array( + [(1, "A"), (1, "B"), (1, "C"), (2, "A"), (2, "B"), (2, "C")], + dtype=[("num", int), ("let", "S1")], + ), + None, + ), + ], + ) + def test_tuple_union_bug(self, method, expected, sort): + index1 = Index( + np.array( + [(1, "A"), (2, "A"), (1, "B"), (2, "B")], + dtype=[("num", int), ("let", "S1")], + ) + ) + index2 = Index( + np.array( + [(1, "A"), (2, "A"), (1, "B"), (2, "B"), (1, "C"), (2, "C")], + dtype=[("num", int), ("let", "S1")], + ) + ) + + result = getattr(index1, method)(index2, sort=sort) + assert result.ndim == 1 + + expected = Index(expected) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("first_list", [["b", "a"], []]) + @pytest.mark.parametrize("second_list", [["a", "b"], []]) + @pytest.mark.parametrize( + "first_name, second_name, expected_name", + [("A", "B", None), (None, "B", None), ("A", None, None)], + ) + def test_union_name_preservation( + self, first_list, second_list, first_name, second_name, expected_name, sort + ): + first = Index(first_list, name=first_name) + second = Index(second_list, name=second_name) + union = first.union(second, sort=sort) + + vals = set(first_list).union(second_list) + + if sort is None and len(first_list) > 0 and len(second_list) > 0: + expected = Index(sorted(vals), name=expected_name) + tm.assert_index_equal(union, expected) + else: + expected = Index(vals, name=expected_name) + tm.assert_index_equal(union.sort_values(), expected.sort_values()) + + @pytest.mark.parametrize( + "diff_type, expected", + [["difference", [1, "B"]], ["symmetric_difference", [1, 2, "B", "C"]]], + ) + def test_difference_object_type(self, diff_type, expected): + # GH 13432 + idx1 = Index([0, 1, "A", "B"]) + idx2 = Index([0, 2, "A", "C"]) + result = getattr(idx1, diff_type)(idx2) + expected = Index(expected) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/base_class/test_where.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/base_class/test_where.py new file mode 100644 index 0000000000000000000000000000000000000000..0c8969735e14e2741bc029b499024af3ec378a92 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/base_class/test_where.py @@ -0,0 +1,13 @@ +import numpy as np + +from pandas import Index +import pandas._testing as tm + + +class TestWhere: + def test_where_intlike_str_doesnt_cast_ints(self): + idx = Index(range(3)) + mask = np.array([True, False, True]) + res = idx.where(mask, "2") + expected = Index([0, "2", 2]) + tm.assert_index_equal(res, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_append.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_append.py new file mode 100644 index 0000000000000000000000000000000000000000..b48c3219f5111a7a1226d09ce4625c723c4168fb --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_append.py @@ -0,0 +1,62 @@ +import pytest + +from pandas import ( + CategoricalIndex, + Index, +) +import pandas._testing as tm + + +class TestAppend: + @pytest.fixture + def ci(self): + categories = list("cab") + return CategoricalIndex(list("aabbca"), categories=categories, ordered=False) + + def test_append(self, ci): + # append cats with the same categories + result = ci[:3].append(ci[3:]) + tm.assert_index_equal(result, ci, exact=True) + + foos = [ci[:1], ci[1:3], ci[3:]] + result = foos[0].append(foos[1:]) + tm.assert_index_equal(result, ci, exact=True) + + def test_append_empty(self, ci): + # empty + result = ci.append([]) + tm.assert_index_equal(result, ci, exact=True) + + def test_append_mismatched_categories(self, ci): + # appending with different categories or reordered is not ok + msg = "all inputs must be Index" + with pytest.raises(TypeError, match=msg): + ci.append(ci.values.set_categories(list("abcd"))) + with pytest.raises(TypeError, match=msg): + ci.append(ci.values.reorder_categories(list("abc"))) + + def test_append_category_objects(self, ci): + # with objects + result = ci.append(Index(["c", "a"])) + expected = CategoricalIndex(list("aabbcaca"), categories=ci.categories) + tm.assert_index_equal(result, expected, exact=True) + + def test_append_non_categories(self, ci): + # invalid objects -> cast to object via concat_compat + result = ci.append(Index(["a", "d"])) + expected = Index(["a", "a", "b", "b", "c", "a", "a", "d"]) + tm.assert_index_equal(result, expected, exact=True) + + def test_append_object(self, ci): + # GH#14298 - if base object is not categorical -> coerce to object + result = Index(["c", "a"]).append(ci) + expected = Index(list("caaabbca")) + tm.assert_index_equal(result, expected, exact=True) + + def test_append_to_another(self): + # hits Index._concat + fst = Index(["a", "b"]) + snd = CategoricalIndex(["d", "e"]) + result = fst.append(snd) + expected = Index(["a", "b", "d", "e"]) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_astype.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_astype.py new file mode 100644 index 0000000000000000000000000000000000000000..a17627b7515b26b1fcfdca0feec376f03a018e83 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_astype.py @@ -0,0 +1,90 @@ +from datetime import date + +import numpy as np +import pytest + +from pandas import ( + Categorical, + CategoricalDtype, + CategoricalIndex, + Index, + IntervalIndex, +) +import pandas._testing as tm + + +class TestAstype: + def test_astype(self): + ci = CategoricalIndex(list("aabbca"), categories=list("cab"), ordered=False) + + result = ci.astype(object) + tm.assert_index_equal(result, Index(np.array(ci), dtype=object)) + + # this IS equal, but not the same class + assert result.equals(ci) + assert isinstance(result, Index) + assert not isinstance(result, CategoricalIndex) + + # interval + ii = IntervalIndex.from_arrays(left=[-0.001, 2.0], right=[2, 4], closed="right") + + ci = CategoricalIndex( + Categorical.from_codes([0, 1, -1], categories=ii, ordered=True) + ) + + result = ci.astype("interval") + expected = ii.take([0, 1, -1], allow_fill=True, fill_value=np.nan) + tm.assert_index_equal(result, expected) + + result = IntervalIndex(result.values) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("name", [None, "foo"]) + @pytest.mark.parametrize("dtype_ordered", [True, False]) + @pytest.mark.parametrize("index_ordered", [True, False]) + def test_astype_category(self, name, dtype_ordered, index_ordered): + # GH#18630 + index = CategoricalIndex( + list("aabbca"), categories=list("cab"), ordered=index_ordered + ) + if name: + index = index.rename(name) + + # standard categories + dtype = CategoricalDtype(ordered=dtype_ordered) + result = index.astype(dtype) + expected = CategoricalIndex( + index.tolist(), + name=name, + categories=index.categories, + ordered=dtype_ordered, + ) + tm.assert_index_equal(result, expected) + + # non-standard categories + dtype = CategoricalDtype(index.unique().tolist()[:-1], dtype_ordered) + result = index.astype(dtype) + expected = CategoricalIndex(index.tolist(), name=name, dtype=dtype) + tm.assert_index_equal(result, expected) + + if dtype_ordered is False: + # dtype='category' can't specify ordered, so only test once + result = index.astype("category") + expected = index + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("box", [True, False]) + def test_categorical_date_roundtrip(self, box): + # astype to categorical and back should preserve date objects + v = date.today() + + obj = Index([v, v]) + assert obj.dtype == object + if box: + obj = obj.array + + cat = obj.astype("category") + + rtrip = cat.astype(object) + assert rtrip.dtype == object + assert type(rtrip[0]) is date diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_category.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_category.py new file mode 100644 index 0000000000000000000000000000000000000000..260b9bf97fea8570c75ec77771e8755b1f733442 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_category.py @@ -0,0 +1,391 @@ +import numpy as np +import pytest + +from pandas._libs import index as libindex +from pandas._libs.arrays import NDArrayBacked + +import pandas as pd +from pandas import ( + Categorical, + CategoricalDtype, +) +import pandas._testing as tm +from pandas.core.indexes.api import ( + CategoricalIndex, + Index, +) + + +class TestCategoricalIndex: + @pytest.fixture + def simple_index(self) -> CategoricalIndex: + return CategoricalIndex(list("aabbca"), categories=list("cab"), ordered=False) + + def test_can_hold_identifiers(self): + idx = CategoricalIndex(list("aabbca"), categories=None, ordered=False) + key = idx[0] + assert idx._can_hold_identifiers_and_holds_name(key) is True + + def test_insert(self, simple_index): + ci = simple_index + categories = ci.categories + + # test 0th element + result = ci.insert(0, "a") + expected = CategoricalIndex(list("aaabbca"), categories=categories) + tm.assert_index_equal(result, expected, exact=True) + + # test Nth element that follows Python list behavior + result = ci.insert(-1, "a") + expected = CategoricalIndex(list("aabbcaa"), categories=categories) + tm.assert_index_equal(result, expected, exact=True) + + # test empty + result = CategoricalIndex([], categories=categories).insert(0, "a") + expected = CategoricalIndex(["a"], categories=categories) + tm.assert_index_equal(result, expected, exact=True) + + # invalid -> cast to object + expected = ci.astype(object).insert(0, "d") + result = ci.insert(0, "d").astype(object) + tm.assert_index_equal(result, expected, exact=True) + + # GH 18295 (test missing) + expected = CategoricalIndex(["a", np.nan, "a", "b", "c", "b"]) + for na in (np.nan, pd.NaT, None): + result = CategoricalIndex(list("aabcb")).insert(1, na) + tm.assert_index_equal(result, expected) + + def test_insert_na_mismatched_dtype(self): + ci = CategoricalIndex([0, 1, 1]) + result = ci.insert(0, pd.NaT) + expected = Index([pd.NaT, 0, 1, 1], dtype=object) + tm.assert_index_equal(result, expected) + + def test_delete(self, simple_index): + ci = simple_index + categories = ci.categories + + result = ci.delete(0) + expected = CategoricalIndex(list("abbca"), categories=categories) + tm.assert_index_equal(result, expected, exact=True) + + result = ci.delete(-1) + expected = CategoricalIndex(list("aabbc"), categories=categories) + tm.assert_index_equal(result, expected, exact=True) + + with tm.external_error_raised((IndexError, ValueError)): + # Either depending on NumPy version + ci.delete(10) + + @pytest.mark.parametrize( + "data, non_lexsorted_data", + [[[1, 2, 3], [9, 0, 1, 2, 3]], [list("abc"), list("fabcd")]], + ) + def test_is_monotonic(self, data, non_lexsorted_data): + c = CategoricalIndex(data) + assert c.is_monotonic_increasing is True + assert c.is_monotonic_decreasing is False + + c = CategoricalIndex(data, ordered=True) + assert c.is_monotonic_increasing is True + assert c.is_monotonic_decreasing is False + + c = CategoricalIndex(data, categories=reversed(data)) + assert c.is_monotonic_increasing is False + assert c.is_monotonic_decreasing is True + + c = CategoricalIndex(data, categories=reversed(data), ordered=True) + assert c.is_monotonic_increasing is False + assert c.is_monotonic_decreasing is True + + # test when data is neither monotonic increasing nor decreasing + reordered_data = [data[0], data[2], data[1]] + c = CategoricalIndex(reordered_data, categories=reversed(data)) + assert c.is_monotonic_increasing is False + assert c.is_monotonic_decreasing is False + + # non lexsorted categories + categories = non_lexsorted_data + + c = CategoricalIndex(categories[:2], categories=categories) + assert c.is_monotonic_increasing is True + assert c.is_monotonic_decreasing is False + + c = CategoricalIndex(categories[1:3], categories=categories) + assert c.is_monotonic_increasing is True + assert c.is_monotonic_decreasing is False + + def test_has_duplicates(self): + idx = CategoricalIndex([0, 0, 0], name="foo") + assert idx.is_unique is False + assert idx.has_duplicates is True + + idx = CategoricalIndex([0, 1], categories=[2, 3], name="foo") + assert idx.is_unique is False + assert idx.has_duplicates is True + + idx = CategoricalIndex([0, 1, 2, 3], categories=[1, 2, 3], name="foo") + assert idx.is_unique is True + assert idx.has_duplicates is False + + @pytest.mark.parametrize( + "data, categories, expected", + [ + ( + [1, 1, 1], + [1, 2, 3], + { + "first": np.array([False, True, True]), + "last": np.array([True, True, False]), + False: np.array([True, True, True]), + }, + ), + ( + [1, 1, 1], + list("abc"), + { + "first": np.array([False, True, True]), + "last": np.array([True, True, False]), + False: np.array([True, True, True]), + }, + ), + ( + [2, "a", "b"], + list("abc"), + { + "first": np.zeros(shape=(3), dtype=np.bool_), + "last": np.zeros(shape=(3), dtype=np.bool_), + False: np.zeros(shape=(3), dtype=np.bool_), + }, + ), + ( + list("abb"), + list("abc"), + { + "first": np.array([False, False, True]), + "last": np.array([False, True, False]), + False: np.array([False, True, True]), + }, + ), + ], + ) + def test_drop_duplicates(self, data, categories, expected): + idx = CategoricalIndex(data, categories=categories, name="foo") + for keep, e in expected.items(): + tm.assert_numpy_array_equal(idx.duplicated(keep=keep), e) + e = idx[~e] + result = idx.drop_duplicates(keep=keep) + tm.assert_index_equal(result, e) + + @pytest.mark.parametrize( + "data, categories, expected_data", + [ + ([1, 1, 1], [1, 2, 3], [1]), + ([1, 1, 1], list("abc"), [np.nan]), + ([1, 2, "a"], [1, 2, 3], [1, 2, np.nan]), + ([2, "a", "b"], list("abc"), [np.nan, "a", "b"]), + ], + ) + def test_unique(self, data, categories, expected_data, ordered): + dtype = CategoricalDtype(categories, ordered=ordered) + + idx = CategoricalIndex(data, dtype=dtype) + expected = CategoricalIndex(expected_data, dtype=dtype) + tm.assert_index_equal(idx.unique(), expected) + + def test_repr_roundtrip(self): + ci = CategoricalIndex(["a", "b"], categories=["a", "b"], ordered=True) + str(ci) + tm.assert_index_equal(eval(repr(ci)), ci, exact=True) + + # formatting + str(ci) + + # long format + # this is not reprable + ci = CategoricalIndex(np.random.default_rng(2).integers(0, 5, size=100)) + str(ci) + + def test_isin(self): + ci = CategoricalIndex(list("aabca") + [np.nan], categories=["c", "a", "b"]) + tm.assert_numpy_array_equal( + ci.isin(["c"]), np.array([False, False, False, True, False, False]) + ) + tm.assert_numpy_array_equal( + ci.isin(["c", "a", "b"]), np.array([True] * 5 + [False]) + ) + tm.assert_numpy_array_equal( + ci.isin(["c", "a", "b", np.nan]), np.array([True] * 6) + ) + + # mismatched categorical -> coerced to ndarray so doesn't matter + result = ci.isin(ci.set_categories(list("abcdefghi"))) + expected = np.array([True] * 6) + tm.assert_numpy_array_equal(result, expected) + + result = ci.isin(ci.set_categories(list("defghi"))) + expected = np.array([False] * 5 + [True]) + tm.assert_numpy_array_equal(result, expected) + + def test_isin_overlapping_intervals(self): + # GH 34974 + idx = pd.IntervalIndex([pd.Interval(0, 2), pd.Interval(0, 1)]) + result = CategoricalIndex(idx).isin(idx) + expected = np.array([True, True]) + tm.assert_numpy_array_equal(result, expected) + + def test_identical(self): + ci1 = CategoricalIndex(["a", "b"], categories=["a", "b"], ordered=True) + ci2 = CategoricalIndex(["a", "b"], categories=["a", "b", "c"], ordered=True) + assert ci1.identical(ci1) + assert ci1.identical(ci1.copy()) + assert not ci1.identical(ci2) + + def test_ensure_copied_data(self): + # gh-12309: Check the "copy" argument of each + # Index.__new__ is honored. + # + # Must be tested separately from other indexes because + # self.values is not an ndarray. + index = CategoricalIndex(list("ab") * 5) + + result = CategoricalIndex(index.values, copy=True) + tm.assert_index_equal(index, result) + assert not np.shares_memory(result._data._codes, index._data._codes) + + result = CategoricalIndex(index.values, copy=False) + assert result._data._codes is index._data._codes + + +class TestCategoricalIndex2: + def test_view_i8(self): + # GH#25464 + ci = CategoricalIndex(list("ab") * 50) + msg = "When changing to a larger dtype, its size must be a divisor" + with pytest.raises(ValueError, match=msg): + ci.view("i8") + with pytest.raises(ValueError, match=msg): + ci._data.view("i8") + + ci = ci[:-4] # length divisible by 8 + + res = ci.view("i8") + expected = ci._data.codes.view("i8") + tm.assert_numpy_array_equal(res, expected) + + cat = ci._data + tm.assert_numpy_array_equal(cat.view("i8"), expected) + + @pytest.mark.parametrize( + "dtype, engine_type", + [ + (np.int8, libindex.Int8Engine), + (np.int16, libindex.Int16Engine), + (np.int32, libindex.Int32Engine), + (np.int64, libindex.Int64Engine), + ], + ) + def test_engine_type(self, dtype, engine_type): + if dtype != np.int64: + # num. of uniques required to push CategoricalIndex.codes to a + # dtype (128 categories required for .codes dtype to be int16 etc.) + num_uniques = {np.int8: 1, np.int16: 128, np.int32: 32768}[dtype] + ci = CategoricalIndex(range(num_uniques)) + else: + # having 2**32 - 2**31 categories would be very memory-intensive, + # so we cheat a bit with the dtype + ci = CategoricalIndex(range(32768)) # == 2**16 - 2**(16 - 1) + arr = ci.values._ndarray.astype("int64") + NDArrayBacked.__init__(ci._data, arr, ci.dtype) + assert np.issubdtype(ci.codes.dtype, dtype) + assert isinstance(ci._engine, engine_type) + + @pytest.mark.parametrize( + "func,op_name", + [ + (lambda idx: idx - idx, "__sub__"), + (lambda idx: idx + idx, "__add__"), + (lambda idx: idx - ["a", "b"], "__sub__"), + (lambda idx: idx + ["a", "b"], "__add__"), + (lambda idx: ["a", "b"] - idx, "__rsub__"), + (lambda idx: ["a", "b"] + idx, "__radd__"), + ], + ) + def test_disallow_addsub_ops(self, func, op_name): + # GH 10039 + # set ops (+/-) raise TypeError + idx = Index(Categorical(["a", "b"])) + cat_or_list = "'(Categorical|list)' and '(Categorical|list)'" + msg = "|".join( + [ + f"cannot perform {op_name} with this index type: CategoricalIndex", + "can only concatenate list", + rf"unsupported operand type\(s\) for [\+-]: {cat_or_list}", + ] + ) + with pytest.raises(TypeError, match=msg): + func(idx) + + def test_method_delegation(self): + ci = CategoricalIndex(list("aabbca"), categories=list("cabdef")) + result = ci.set_categories(list("cab")) + tm.assert_index_equal( + result, CategoricalIndex(list("aabbca"), categories=list("cab")) + ) + + ci = CategoricalIndex(list("aabbca"), categories=list("cab")) + result = ci.rename_categories(list("efg")) + tm.assert_index_equal( + result, CategoricalIndex(list("ffggef"), categories=list("efg")) + ) + + # GH18862 (let rename_categories take callables) + result = ci.rename_categories(lambda x: x.upper()) + tm.assert_index_equal( + result, CategoricalIndex(list("AABBCA"), categories=list("CAB")) + ) + + ci = CategoricalIndex(list("aabbca"), categories=list("cab")) + result = ci.add_categories(["d"]) + tm.assert_index_equal( + result, CategoricalIndex(list("aabbca"), categories=list("cabd")) + ) + + ci = CategoricalIndex(list("aabbca"), categories=list("cab")) + result = ci.remove_categories(["c"]) + tm.assert_index_equal( + result, + CategoricalIndex(list("aabb") + [np.nan] + ["a"], categories=list("ab")), + ) + + ci = CategoricalIndex(list("aabbca"), categories=list("cabdef")) + result = ci.as_unordered() + tm.assert_index_equal(result, ci) + + ci = CategoricalIndex(list("aabbca"), categories=list("cabdef")) + result = ci.as_ordered() + tm.assert_index_equal( + result, + CategoricalIndex(list("aabbca"), categories=list("cabdef"), ordered=True), + ) + + # invalid + msg = "cannot use inplace with CategoricalIndex" + with pytest.raises(ValueError, match=msg): + ci.set_categories(list("cab"), inplace=True) + + def test_remove_maintains_order(self): + ci = CategoricalIndex(list("abcdda"), categories=list("abcd")) + result = ci.reorder_categories(["d", "c", "b", "a"], ordered=True) + tm.assert_index_equal( + result, + CategoricalIndex(list("abcdda"), categories=list("dcba"), ordered=True), + ) + result = result.remove_categories(["c"]) + tm.assert_index_equal( + result, + CategoricalIndex( + ["a", "b", np.nan, "d", "d", "a"], categories=list("dba"), ordered=True + ), + ) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_constructors.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_constructors.py new file mode 100644 index 0000000000000000000000000000000000000000..f0c5307fc5c641ff25d26bd2bd8a158b43dd6a6d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_constructors.py @@ -0,0 +1,142 @@ +import numpy as np +import pytest + +from pandas import ( + Categorical, + CategoricalDtype, + CategoricalIndex, + Index, +) +import pandas._testing as tm + + +class TestCategoricalIndexConstructors: + def test_construction_disallows_scalar(self): + msg = "must be called with a collection of some kind" + with pytest.raises(TypeError, match=msg): + CategoricalIndex(data=1, categories=list("abcd"), ordered=False) + with pytest.raises(TypeError, match=msg): + CategoricalIndex(categories=list("abcd"), ordered=False) + + def test_construction(self): + ci = CategoricalIndex(list("aabbca"), categories=list("abcd"), ordered=False) + categories = ci.categories + + result = Index(ci) + tm.assert_index_equal(result, ci, exact=True) + assert not result.ordered + + result = Index(ci.values) + tm.assert_index_equal(result, ci, exact=True) + assert not result.ordered + + # empty + result = CategoricalIndex([], categories=categories) + tm.assert_index_equal(result.categories, Index(categories)) + tm.assert_numpy_array_equal(result.codes, np.array([], dtype="int8")) + assert not result.ordered + + # passing categories + result = CategoricalIndex(list("aabbca"), categories=categories) + tm.assert_index_equal(result.categories, Index(categories)) + tm.assert_numpy_array_equal( + result.codes, np.array([0, 0, 1, 1, 2, 0], dtype="int8") + ) + + c = Categorical(list("aabbca")) + result = CategoricalIndex(c) + tm.assert_index_equal(result.categories, Index(list("abc"))) + tm.assert_numpy_array_equal( + result.codes, np.array([0, 0, 1, 1, 2, 0], dtype="int8") + ) + assert not result.ordered + + result = CategoricalIndex(c, categories=categories) + tm.assert_index_equal(result.categories, Index(categories)) + tm.assert_numpy_array_equal( + result.codes, np.array([0, 0, 1, 1, 2, 0], dtype="int8") + ) + assert not result.ordered + + ci = CategoricalIndex(c, categories=list("abcd")) + result = CategoricalIndex(ci) + tm.assert_index_equal(result.categories, Index(categories)) + tm.assert_numpy_array_equal( + result.codes, np.array([0, 0, 1, 1, 2, 0], dtype="int8") + ) + assert not result.ordered + + result = CategoricalIndex(ci, categories=list("ab")) + tm.assert_index_equal(result.categories, Index(list("ab"))) + tm.assert_numpy_array_equal( + result.codes, np.array([0, 0, 1, 1, -1, 0], dtype="int8") + ) + assert not result.ordered + + result = CategoricalIndex(ci, categories=list("ab"), ordered=True) + tm.assert_index_equal(result.categories, Index(list("ab"))) + tm.assert_numpy_array_equal( + result.codes, np.array([0, 0, 1, 1, -1, 0], dtype="int8") + ) + assert result.ordered + + result = CategoricalIndex(ci, categories=list("ab"), ordered=True) + expected = CategoricalIndex( + ci, categories=list("ab"), ordered=True, dtype="category" + ) + tm.assert_index_equal(result, expected, exact=True) + + # turn me to an Index + result = Index(np.array(ci)) + assert isinstance(result, Index) + assert not isinstance(result, CategoricalIndex) + + def test_construction_with_dtype(self): + # specify dtype + ci = CategoricalIndex(list("aabbca"), categories=list("abc"), ordered=False) + + result = Index(np.array(ci), dtype="category") + tm.assert_index_equal(result, ci, exact=True) + + result = Index(np.array(ci).tolist(), dtype="category") + tm.assert_index_equal(result, ci, exact=True) + + # these are generally only equal when the categories are reordered + ci = CategoricalIndex(list("aabbca"), categories=list("cab"), ordered=False) + + result = Index(np.array(ci), dtype="category").reorder_categories(ci.categories) + tm.assert_index_equal(result, ci, exact=True) + + # make sure indexes are handled + idx = Index(range(3)) + expected = CategoricalIndex([0, 1, 2], categories=idx, ordered=True) + result = CategoricalIndex(idx, categories=idx, ordered=True) + tm.assert_index_equal(result, expected, exact=True) + + def test_construction_empty_with_bool_categories(self): + # see GH#22702 + cat = CategoricalIndex([], categories=[True, False]) + categories = sorted(cat.categories.tolist()) + assert categories == [False, True] + + def test_construction_with_categorical_dtype(self): + # construction with CategoricalDtype + # GH#18109 + data, cats, ordered = "a a b b".split(), "c b a".split(), True + dtype = CategoricalDtype(categories=cats, ordered=ordered) + + result = CategoricalIndex(data, dtype=dtype) + expected = CategoricalIndex(data, categories=cats, ordered=ordered) + tm.assert_index_equal(result, expected, exact=True) + + # GH#19032 + result = Index(data, dtype=dtype) + tm.assert_index_equal(result, expected, exact=True) + + # error when combining categories/ordered and dtype kwargs + msg = "Cannot specify `categories` or `ordered` together with `dtype`." + with pytest.raises(ValueError, match=msg): + CategoricalIndex(data, categories=cats, dtype=dtype) + + with pytest.raises(ValueError, match=msg): + CategoricalIndex(data, ordered=ordered, dtype=dtype) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_equals.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_equals.py new file mode 100644 index 0000000000000000000000000000000000000000..a8353f301a3c39a50b2a0c5541722551ff660e30 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_equals.py @@ -0,0 +1,96 @@ +import numpy as np +import pytest + +from pandas import ( + Categorical, + CategoricalIndex, + Index, + MultiIndex, +) + + +class TestEquals: + def test_equals_categorical(self): + ci1 = CategoricalIndex(["a", "b"], categories=["a", "b"], ordered=True) + ci2 = CategoricalIndex(["a", "b"], categories=["a", "b", "c"], ordered=True) + + assert ci1.equals(ci1) + assert not ci1.equals(ci2) + assert ci1.equals(ci1.astype(object)) + assert ci1.astype(object).equals(ci1) + + assert (ci1 == ci1).all() + assert not (ci1 != ci1).all() + assert not (ci1 > ci1).all() + assert not (ci1 < ci1).all() + assert (ci1 <= ci1).all() + assert (ci1 >= ci1).all() + + assert not (ci1 == 1).all() + assert (ci1 == Index(["a", "b"])).all() + assert (ci1 == ci1.values).all() + + # invalid comparisons + with pytest.raises(ValueError, match="Lengths must match"): + ci1 == Index(["a", "b", "c"]) + + msg = "Categoricals can only be compared if 'categories' are the same" + with pytest.raises(TypeError, match=msg): + ci1 == ci2 + with pytest.raises(TypeError, match=msg): + ci1 == Categorical(ci1.values, ordered=False) + with pytest.raises(TypeError, match=msg): + ci1 == Categorical(ci1.values, categories=list("abc")) + + # tests + # make sure that we are testing for category inclusion properly + ci = CategoricalIndex(list("aabca"), categories=["c", "a", "b"]) + assert not ci.equals(list("aabca")) + # Same categories, but different order + # Unordered + assert ci.equals(CategoricalIndex(list("aabca"))) + # Ordered + assert not ci.equals(CategoricalIndex(list("aabca"), ordered=True)) + assert ci.equals(ci.copy()) + + ci = CategoricalIndex(list("aabca") + [np.nan], categories=["c", "a", "b"]) + assert not ci.equals(list("aabca")) + assert not ci.equals(CategoricalIndex(list("aabca"))) + assert ci.equals(ci.copy()) + + ci = CategoricalIndex(list("aabca") + [np.nan], categories=["c", "a", "b"]) + assert not ci.equals(list("aabca") + [np.nan]) + assert ci.equals(CategoricalIndex(list("aabca") + [np.nan])) + assert not ci.equals(CategoricalIndex(list("aabca") + [np.nan], ordered=True)) + assert ci.equals(ci.copy()) + + def test_equals_categorical_unordered(self): + # https://github.com/pandas-dev/pandas/issues/16603 + a = CategoricalIndex(["A"], categories=["A", "B"]) + b = CategoricalIndex(["A"], categories=["B", "A"]) + c = CategoricalIndex(["C"], categories=["B", "A"]) + assert a.equals(b) + assert not a.equals(c) + assert not b.equals(c) + + def test_equals_non_category(self): + # GH#37667 Case where other contains a value not among ci's + # categories ("D") and also contains np.nan + ci = CategoricalIndex(["A", "B", np.nan, np.nan]) + other = Index(["A", "B", "D", np.nan]) + + assert not ci.equals(other) + + def test_equals_multiindex(self): + # dont raise NotImplementedError when calling is_dtype_compat + + mi = MultiIndex.from_arrays([["A", "B", "C", "D"], range(4)]) + ci = mi.to_flat_index().astype("category") + + assert not ci.equals(mi) + + def test_equals_string_dtype(self, any_string_dtype): + # GH#55364 + idx = CategoricalIndex(list("abc"), name="B") + other = Index(["a", "b", "c"], name="B", dtype=any_string_dtype) + assert idx.equals(other) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_fillna.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_fillna.py new file mode 100644 index 0000000000000000000000000000000000000000..09de578f3c649e5a90278f11b1e3cd5b1d0646d5 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_fillna.py @@ -0,0 +1,54 @@ +import numpy as np +import pytest + +from pandas import CategoricalIndex +import pandas._testing as tm + + +class TestFillNA: + def test_fillna_categorical(self): + # GH#11343 + idx = CategoricalIndex([1.0, np.nan, 3.0, 1.0], name="x") + # fill by value in categories + exp = CategoricalIndex([1.0, 1.0, 3.0, 1.0], name="x") + tm.assert_index_equal(idx.fillna(1.0), exp) + + cat = idx._data + + # fill by value not in categories raises TypeError on EA, casts on CI + msg = "Cannot setitem on a Categorical with a new category" + with pytest.raises(TypeError, match=msg): + cat.fillna(2.0) + + result = idx.fillna(2.0) + expected = idx.astype(object).fillna(2.0) + tm.assert_index_equal(result, expected) + + def test_fillna_copies_with_no_nas(self): + # Nothing to fill, should still get a copy for the Categorical method, + # but OK to get a view on CategoricalIndex method + ci = CategoricalIndex([0, 1, 1]) + result = ci.fillna(0) + assert result is not ci + assert tm.shares_memory(result, ci) + + # But at the EA level we always get a copy. + cat = ci._data + result = cat.fillna(0) + assert result._ndarray is not cat._ndarray + assert result._ndarray.base is None + assert not tm.shares_memory(result, cat) + + def test_fillna_validates_with_no_nas(self): + # We validate the fill value even if fillna is a no-op + ci = CategoricalIndex([2, 3, 3]) + cat = ci._data + + msg = "Cannot setitem on a Categorical with a new category" + res = ci.fillna(False) + # nothing to fill, so we dont cast + tm.assert_index_equal(res, ci) + + # Same check directly on the Categorical + with pytest.raises(TypeError, match=msg): + cat.fillna(False) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_formats.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_formats.py new file mode 100644 index 0000000000000000000000000000000000000000..e8489e4ad8161ba8b53f2f16918fa0a992babe3f --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_formats.py @@ -0,0 +1,120 @@ +""" +Tests for CategoricalIndex.__repr__ and related methods. +""" +import pytest + +from pandas._config import using_string_dtype +import pandas._config.config as cf + +from pandas import CategoricalIndex +import pandas._testing as tm + + +class TestCategoricalIndexRepr: + def test_format_different_scalar_lengths(self): + # GH#35439 + idx = CategoricalIndex(["aaaaaaaaa", "b"]) + expected = ["aaaaaaaaa", "b"] + msg = r"CategoricalIndex\.format is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + assert idx.format() == expected + + @pytest.mark.xfail(using_string_dtype(), reason="repr different") + def test_string_categorical_index_repr(self): + # short + idx = CategoricalIndex(["a", "bb", "ccc"]) + expected = """CategoricalIndex(['a', 'bb', 'ccc'], categories=['a', 'bb', 'ccc'], ordered=False, dtype='category')""" # noqa: E501 + assert repr(idx) == expected + + # multiple lines + idx = CategoricalIndex(["a", "bb", "ccc"] * 10) + expected = """CategoricalIndex(['a', 'bb', 'ccc', 'a', 'bb', 'ccc', 'a', 'bb', 'ccc', 'a', + 'bb', 'ccc', 'a', 'bb', 'ccc', 'a', 'bb', 'ccc', 'a', 'bb', + 'ccc', 'a', 'bb', 'ccc', 'a', 'bb', 'ccc', 'a', 'bb', 'ccc'], + categories=['a', 'bb', 'ccc'], ordered=False, dtype='category')""" # noqa: E501 + + assert repr(idx) == expected + + # truncated + idx = CategoricalIndex(["a", "bb", "ccc"] * 100) + expected = """CategoricalIndex(['a', 'bb', 'ccc', 'a', 'bb', 'ccc', 'a', 'bb', 'ccc', 'a', + ... + 'ccc', 'a', 'bb', 'ccc', 'a', 'bb', 'ccc', 'a', 'bb', 'ccc'], + categories=['a', 'bb', 'ccc'], ordered=False, dtype='category', length=300)""" # noqa: E501 + + assert repr(idx) == expected + + # larger categories + idx = CategoricalIndex(list("abcdefghijklmmo")) + expected = """CategoricalIndex(['a', 'b', 'c', 'd', 'e', 'f', 'g', 'h', 'i', 'j', 'k', 'l', + 'm', 'm', 'o'], + categories=['a', 'b', 'c', 'd', ..., 'k', 'l', 'm', 'o'], ordered=False, dtype='category')""" # noqa: E501 + + assert repr(idx) == expected + + # short + idx = CategoricalIndex(["あ", "いい", "ううう"]) + expected = """CategoricalIndex(['あ', 'いい', 'ううう'], categories=['あ', 'いい', 'ううう'], ordered=False, dtype='category')""" # noqa: E501 + assert repr(idx) == expected + + # multiple lines + idx = CategoricalIndex(["あ", "いい", "ううう"] * 10) + expected = """CategoricalIndex(['あ', 'いい', 'ううう', 'あ', 'いい', 'ううう', 'あ', 'いい', 'ううう', 'あ', + 'いい', 'ううう', 'あ', 'いい', 'ううう', 'あ', 'いい', 'ううう', 'あ', 'いい', + 'ううう', 'あ', 'いい', 'ううう', 'あ', 'いい', 'ううう', 'あ', 'いい', 'ううう'], + categories=['あ', 'いい', 'ううう'], ordered=False, dtype='category')""" # noqa: E501 + + assert repr(idx) == expected + + # truncated + idx = CategoricalIndex(["あ", "いい", "ううう"] * 100) + expected = """CategoricalIndex(['あ', 'いい', 'ううう', 'あ', 'いい', 'ううう', 'あ', 'いい', 'ううう', 'あ', + ... + 'ううう', 'あ', 'いい', 'ううう', 'あ', 'いい', 'ううう', 'あ', 'いい', 'ううう'], + categories=['あ', 'いい', 'ううう'], ordered=False, dtype='category', length=300)""" # noqa: E501 + + assert repr(idx) == expected + + # larger categories + idx = CategoricalIndex(list("あいうえおかきくけこさしすせそ")) + expected = """CategoricalIndex(['あ', 'い', 'う', 'え', 'お', 'か', 'き', 'く', 'け', 'こ', 'さ', 'し', + 'す', 'せ', 'そ'], + categories=['あ', 'い', 'う', 'え', ..., 'し', 'す', 'せ', 'そ'], ordered=False, dtype='category')""" # noqa: E501 + + assert repr(idx) == expected + + # Enable Unicode option ----------------------------------------- + with cf.option_context("display.unicode.east_asian_width", True): + # short + idx = CategoricalIndex(["あ", "いい", "ううう"]) + expected = """CategoricalIndex(['あ', 'いい', 'ううう'], categories=['あ', 'いい', 'ううう'], ordered=False, dtype='category')""" # noqa: E501 + assert repr(idx) == expected + + # multiple lines + idx = CategoricalIndex(["あ", "いい", "ううう"] * 10) + expected = """CategoricalIndex(['あ', 'いい', 'ううう', 'あ', 'いい', 'ううう', 'あ', 'いい', + 'ううう', 'あ', 'いい', 'ううう', 'あ', 'いい', 'ううう', + 'あ', 'いい', 'ううう', 'あ', 'いい', 'ううう', 'あ', 'いい', + 'ううう', 'あ', 'いい', 'ううう', 'あ', 'いい', 'ううう'], + categories=['あ', 'いい', 'ううう'], ordered=False, dtype='category')""" # noqa: E501 + + assert repr(idx) == expected + + # truncated + idx = CategoricalIndex(["あ", "いい", "ううう"] * 100) + expected = """CategoricalIndex(['あ', 'いい', 'ううう', 'あ', 'いい', 'ううう', 'あ', 'いい', + 'ううう', 'あ', + ... + 'ううう', 'あ', 'いい', 'ううう', 'あ', 'いい', 'ううう', + 'あ', 'いい', 'ううう'], + categories=['あ', 'いい', 'ううう'], ordered=False, dtype='category', length=300)""" # noqa: E501 + + assert repr(idx) == expected + + # larger categories + idx = CategoricalIndex(list("あいうえおかきくけこさしすせそ")) + expected = """CategoricalIndex(['あ', 'い', 'う', 'え', 'お', 'か', 'き', 'く', 'け', 'こ', + 'さ', 'し', 'す', 'せ', 'そ'], + categories=['あ', 'い', 'う', 'え', ..., 'し', 'す', 'せ', 'そ'], ordered=False, dtype='category')""" # noqa: E501 + + assert repr(idx) == expected diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_indexing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_indexing.py new file mode 100644 index 0000000000000000000000000000000000000000..49eb79da616e7603b70ee3189e9004dd51fb33e7 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_indexing.py @@ -0,0 +1,420 @@ +import numpy as np +import pytest + +from pandas.errors import InvalidIndexError + +import pandas as pd +from pandas import ( + CategoricalIndex, + Index, + IntervalIndex, + Timestamp, +) +import pandas._testing as tm + + +class TestTake: + def test_take_fill_value(self): + # GH 12631 + + # numeric category + idx = CategoricalIndex([1, 2, 3], name="xxx") + result = idx.take(np.array([1, 0, -1])) + expected = CategoricalIndex([2, 1, 3], name="xxx") + tm.assert_index_equal(result, expected) + tm.assert_categorical_equal(result.values, expected.values) + + # fill_value + result = idx.take(np.array([1, 0, -1]), fill_value=True) + expected = CategoricalIndex([2, 1, np.nan], categories=[1, 2, 3], name="xxx") + tm.assert_index_equal(result, expected) + tm.assert_categorical_equal(result.values, expected.values) + + # allow_fill=False + result = idx.take(np.array([1, 0, -1]), allow_fill=False, fill_value=True) + expected = CategoricalIndex([2, 1, 3], name="xxx") + tm.assert_index_equal(result, expected) + tm.assert_categorical_equal(result.values, expected.values) + + # object category + idx = CategoricalIndex( + list("CBA"), categories=list("ABC"), ordered=True, name="xxx" + ) + result = idx.take(np.array([1, 0, -1])) + expected = CategoricalIndex( + list("BCA"), categories=list("ABC"), ordered=True, name="xxx" + ) + tm.assert_index_equal(result, expected) + tm.assert_categorical_equal(result.values, expected.values) + + # fill_value + result = idx.take(np.array([1, 0, -1]), fill_value=True) + expected = CategoricalIndex( + ["B", "C", np.nan], categories=list("ABC"), ordered=True, name="xxx" + ) + tm.assert_index_equal(result, expected) + tm.assert_categorical_equal(result.values, expected.values) + + # allow_fill=False + result = idx.take(np.array([1, 0, -1]), allow_fill=False, fill_value=True) + expected = CategoricalIndex( + list("BCA"), categories=list("ABC"), ordered=True, name="xxx" + ) + tm.assert_index_equal(result, expected) + tm.assert_categorical_equal(result.values, expected.values) + + msg = ( + "When allow_fill=True and fill_value is not None, " + "all indices must be >= -1" + ) + with pytest.raises(ValueError, match=msg): + idx.take(np.array([1, 0, -2]), fill_value=True) + with pytest.raises(ValueError, match=msg): + idx.take(np.array([1, 0, -5]), fill_value=True) + + msg = "index -5 is out of bounds for (axis 0 with )?size 3" + with pytest.raises(IndexError, match=msg): + idx.take(np.array([1, -5])) + + def test_take_fill_value_datetime(self): + # datetime category + idx = pd.DatetimeIndex(["2011-01-01", "2011-02-01", "2011-03-01"], name="xxx") + idx = CategoricalIndex(idx) + result = idx.take(np.array([1, 0, -1])) + expected = pd.DatetimeIndex( + ["2011-02-01", "2011-01-01", "2011-03-01"], name="xxx" + ) + expected = CategoricalIndex(expected) + tm.assert_index_equal(result, expected) + + # fill_value + result = idx.take(np.array([1, 0, -1]), fill_value=True) + expected = pd.DatetimeIndex(["2011-02-01", "2011-01-01", "NaT"], name="xxx") + exp_cats = pd.DatetimeIndex(["2011-01-01", "2011-02-01", "2011-03-01"]) + expected = CategoricalIndex(expected, categories=exp_cats) + tm.assert_index_equal(result, expected) + + # allow_fill=False + result = idx.take(np.array([1, 0, -1]), allow_fill=False, fill_value=True) + expected = pd.DatetimeIndex( + ["2011-02-01", "2011-01-01", "2011-03-01"], name="xxx" + ) + expected = CategoricalIndex(expected) + tm.assert_index_equal(result, expected) + + msg = ( + "When allow_fill=True and fill_value is not None, " + "all indices must be >= -1" + ) + with pytest.raises(ValueError, match=msg): + idx.take(np.array([1, 0, -2]), fill_value=True) + with pytest.raises(ValueError, match=msg): + idx.take(np.array([1, 0, -5]), fill_value=True) + + msg = "index -5 is out of bounds for (axis 0 with )?size 3" + with pytest.raises(IndexError, match=msg): + idx.take(np.array([1, -5])) + + def test_take_invalid_kwargs(self): + idx = CategoricalIndex([1, 2, 3], name="foo") + indices = [1, 0, -1] + + msg = r"take\(\) got an unexpected keyword argument 'foo'" + with pytest.raises(TypeError, match=msg): + idx.take(indices, foo=2) + + msg = "the 'out' parameter is not supported" + with pytest.raises(ValueError, match=msg): + idx.take(indices, out=indices) + + msg = "the 'mode' parameter is not supported" + with pytest.raises(ValueError, match=msg): + idx.take(indices, mode="clip") + + +class TestGetLoc: + def test_get_loc(self): + # GH 12531 + cidx1 = CategoricalIndex(list("abcde"), categories=list("edabc")) + idx1 = Index(list("abcde")) + assert cidx1.get_loc("a") == idx1.get_loc("a") + assert cidx1.get_loc("e") == idx1.get_loc("e") + + for i in [cidx1, idx1]: + with pytest.raises(KeyError, match="'NOT-EXIST'"): + i.get_loc("NOT-EXIST") + + # non-unique + cidx2 = CategoricalIndex(list("aacded"), categories=list("edabc")) + idx2 = Index(list("aacded")) + + # results in bool array + res = cidx2.get_loc("d") + tm.assert_numpy_array_equal(res, idx2.get_loc("d")) + tm.assert_numpy_array_equal( + res, np.array([False, False, False, True, False, True]) + ) + # unique element results in scalar + res = cidx2.get_loc("e") + assert res == idx2.get_loc("e") + assert res == 4 + + for i in [cidx2, idx2]: + with pytest.raises(KeyError, match="'NOT-EXIST'"): + i.get_loc("NOT-EXIST") + + # non-unique, sliceable + cidx3 = CategoricalIndex(list("aabbb"), categories=list("abc")) + idx3 = Index(list("aabbb")) + + # results in slice + res = cidx3.get_loc("a") + assert res == idx3.get_loc("a") + assert res == slice(0, 2, None) + + res = cidx3.get_loc("b") + assert res == idx3.get_loc("b") + assert res == slice(2, 5, None) + + for i in [cidx3, idx3]: + with pytest.raises(KeyError, match="'c'"): + i.get_loc("c") + + def test_get_loc_unique(self): + cidx = CategoricalIndex(list("abc")) + result = cidx.get_loc("b") + assert result == 1 + + def test_get_loc_monotonic_nonunique(self): + cidx = CategoricalIndex(list("abbc")) + result = cidx.get_loc("b") + expected = slice(1, 3, None) + assert result == expected + + def test_get_loc_nonmonotonic_nonunique(self): + cidx = CategoricalIndex(list("abcb")) + result = cidx.get_loc("b") + expected = np.array([False, True, False, True], dtype=bool) + tm.assert_numpy_array_equal(result, expected) + + def test_get_loc_nan(self): + # GH#41933 + ci = CategoricalIndex(["A", "B", np.nan]) + res = ci.get_loc(np.nan) + + assert res == 2 + + +class TestGetIndexer: + def test_get_indexer_base(self): + # Determined by cat ordering. + idx = CategoricalIndex(list("cab"), categories=list("cab")) + expected = np.arange(len(idx), dtype=np.intp) + + actual = idx.get_indexer(idx) + tm.assert_numpy_array_equal(expected, actual) + + with pytest.raises(ValueError, match="Invalid fill method"): + idx.get_indexer(idx, method="invalid") + + def test_get_indexer_requires_unique(self): + ci = CategoricalIndex(list("aabbca"), categories=list("cab"), ordered=False) + oidx = Index(np.array(ci)) + + msg = "Reindexing only valid with uniquely valued Index objects" + + for n in [1, 2, 5, len(ci)]: + finder = oidx[np.random.default_rng(2).integers(0, len(ci), size=n)] + + with pytest.raises(InvalidIndexError, match=msg): + ci.get_indexer(finder) + + # see gh-17323 + # + # Even when indexer is equal to the + # members in the index, we should + # respect duplicates instead of taking + # the fast-track path. + for finder in [list("aabbca"), list("aababca")]: + with pytest.raises(InvalidIndexError, match=msg): + ci.get_indexer(finder) + + def test_get_indexer_non_unique(self): + idx1 = CategoricalIndex(list("aabcde"), categories=list("edabc")) + idx2 = CategoricalIndex(list("abf")) + + for indexer in [idx2, list("abf"), Index(list("abf"))]: + msg = "Reindexing only valid with uniquely valued Index objects" + with pytest.raises(InvalidIndexError, match=msg): + idx1.get_indexer(indexer) + + r1, _ = idx1.get_indexer_non_unique(indexer) + expected = np.array([0, 1, 2, -1], dtype=np.intp) + tm.assert_almost_equal(r1, expected) + + def test_get_indexer_method(self): + idx1 = CategoricalIndex(list("aabcde"), categories=list("edabc")) + idx2 = CategoricalIndex(list("abf")) + + msg = "method pad not yet implemented for CategoricalIndex" + with pytest.raises(NotImplementedError, match=msg): + idx2.get_indexer(idx1, method="pad") + msg = "method backfill not yet implemented for CategoricalIndex" + with pytest.raises(NotImplementedError, match=msg): + idx2.get_indexer(idx1, method="backfill") + + msg = "method nearest not yet implemented for CategoricalIndex" + with pytest.raises(NotImplementedError, match=msg): + idx2.get_indexer(idx1, method="nearest") + + def test_get_indexer_array(self): + arr = np.array( + [Timestamp("1999-12-31 00:00:00"), Timestamp("2000-12-31 00:00:00")], + dtype=object, + ) + cats = [Timestamp("1999-12-31 00:00:00"), Timestamp("2000-12-31 00:00:00")] + ci = CategoricalIndex(cats, categories=cats, ordered=False, dtype="category") + result = ci.get_indexer(arr) + expected = np.array([0, 1], dtype="intp") + tm.assert_numpy_array_equal(result, expected) + + def test_get_indexer_same_categories_same_order(self): + ci = CategoricalIndex(["a", "b"], categories=["a", "b"]) + + result = ci.get_indexer(CategoricalIndex(["b", "b"], categories=["a", "b"])) + expected = np.array([1, 1], dtype="intp") + tm.assert_numpy_array_equal(result, expected) + + def test_get_indexer_same_categories_different_order(self): + # https://github.com/pandas-dev/pandas/issues/19551 + ci = CategoricalIndex(["a", "b"], categories=["a", "b"]) + + result = ci.get_indexer(CategoricalIndex(["b", "b"], categories=["b", "a"])) + expected = np.array([1, 1], dtype="intp") + tm.assert_numpy_array_equal(result, expected) + + def test_get_indexer_nans_in_index_and_target(self): + # GH 45361 + ci = CategoricalIndex([1, 2, np.nan, 3]) + other1 = [2, 3, 4, np.nan] + res1 = ci.get_indexer(other1) + expected1 = np.array([1, 3, -1, 2], dtype=np.intp) + tm.assert_numpy_array_equal(res1, expected1) + other2 = [1, 4, 2, 3] + res2 = ci.get_indexer(other2) + expected2 = np.array([0, -1, 1, 3], dtype=np.intp) + tm.assert_numpy_array_equal(res2, expected2) + + +class TestWhere: + def test_where(self, listlike_box): + klass = listlike_box + + i = CategoricalIndex(list("aabbca"), categories=list("cab"), ordered=False) + cond = [True] * len(i) + expected = i + result = i.where(klass(cond)) + tm.assert_index_equal(result, expected) + + cond = [False] + [True] * (len(i) - 1) + expected = CategoricalIndex([np.nan] + i[1:].tolist(), categories=i.categories) + result = i.where(klass(cond)) + tm.assert_index_equal(result, expected) + + def test_where_non_categories(self): + ci = CategoricalIndex(["a", "b", "c", "d"]) + mask = np.array([True, False, True, False]) + + result = ci.where(mask, 2) + expected = Index(["a", 2, "c", 2], dtype=object) + tm.assert_index_equal(result, expected) + + msg = "Cannot setitem on a Categorical with a new category" + with pytest.raises(TypeError, match=msg): + # Test the Categorical method directly + ci._data._where(mask, 2) + + +class TestContains: + def test_contains(self): + ci = CategoricalIndex(list("aabbca"), categories=list("cabdef"), ordered=False) + + assert "a" in ci + assert "z" not in ci + assert "e" not in ci + assert np.nan not in ci + + # assert codes NOT in index + assert 0 not in ci + assert 1 not in ci + + def test_contains_nan(self): + ci = CategoricalIndex(list("aabbca") + [np.nan], categories=list("cabdef")) + assert np.nan in ci + + @pytest.mark.parametrize("unwrap", [True, False]) + def test_contains_na_dtype(self, unwrap): + dti = pd.date_range("2016-01-01", periods=100).insert(0, pd.NaT) + pi = dti.to_period("D") + tdi = dti - dti[-1] + ci = CategoricalIndex(dti) + + obj = ci + if unwrap: + obj = ci._data + + assert np.nan in obj + assert None in obj + assert pd.NaT in obj + assert np.datetime64("NaT") in obj + assert np.timedelta64("NaT") not in obj + + obj2 = CategoricalIndex(tdi) + if unwrap: + obj2 = obj2._data + + assert np.nan in obj2 + assert None in obj2 + assert pd.NaT in obj2 + assert np.datetime64("NaT") not in obj2 + assert np.timedelta64("NaT") in obj2 + + obj3 = CategoricalIndex(pi) + if unwrap: + obj3 = obj3._data + + assert np.nan in obj3 + assert None in obj3 + assert pd.NaT in obj3 + assert np.datetime64("NaT") not in obj3 + assert np.timedelta64("NaT") not in obj3 + + @pytest.mark.parametrize( + "item, expected", + [ + (pd.Interval(0, 1), True), + (1.5, True), + (pd.Interval(0.5, 1.5), False), + ("a", False), + (Timestamp(1), False), + (pd.Timedelta(1), False), + ], + ids=str, + ) + def test_contains_interval(self, item, expected): + # GH 23705 + ci = CategoricalIndex(IntervalIndex.from_breaks(range(3))) + result = item in ci + assert result is expected + + def test_contains_list(self): + # GH#21729 + idx = CategoricalIndex([1, 2, 3]) + + assert "a" not in idx + + with pytest.raises(TypeError, match="unhashable type"): + ["a"] in idx + + with pytest.raises(TypeError, match="unhashable type"): + ["a", "b"] in idx diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_map.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_map.py new file mode 100644 index 0000000000000000000000000000000000000000..baf836594dfb5e03332b57522f39a679ee5b1e40 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_map.py @@ -0,0 +1,144 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + CategoricalIndex, + Index, + Series, +) +import pandas._testing as tm + + +@pytest.mark.parametrize( + "data, categories", + [ + (list("abcbca"), list("cab")), + (pd.interval_range(0, 3).repeat(3), pd.interval_range(0, 3)), + ], + ids=["string", "interval"], +) +def test_map_str(data, categories, ordered): + # GH 31202 - override base class since we want to maintain categorical/ordered + index = CategoricalIndex(data, categories=categories, ordered=ordered) + result = index.map(str) + expected = CategoricalIndex( + map(str, data), categories=map(str, categories), ordered=ordered + ) + tm.assert_index_equal(result, expected) + + +def test_map(): + ci = CategoricalIndex(list("ABABC"), categories=list("CBA"), ordered=True) + result = ci.map(lambda x: x.lower()) + exp = CategoricalIndex(list("ababc"), categories=list("cba"), ordered=True) + tm.assert_index_equal(result, exp) + + ci = CategoricalIndex( + list("ABABC"), categories=list("BAC"), ordered=False, name="XXX" + ) + result = ci.map(lambda x: x.lower()) + exp = CategoricalIndex( + list("ababc"), categories=list("bac"), ordered=False, name="XXX" + ) + tm.assert_index_equal(result, exp) + + # GH 12766: Return an index not an array + tm.assert_index_equal( + ci.map(lambda x: 1), Index(np.array([1] * 5, dtype=np.int64), name="XXX") + ) + + # change categories dtype + ci = CategoricalIndex(list("ABABC"), categories=list("BAC"), ordered=False) + + def f(x): + return {"A": 10, "B": 20, "C": 30}.get(x) + + result = ci.map(f) + exp = CategoricalIndex([10, 20, 10, 20, 30], categories=[20, 10, 30], ordered=False) + tm.assert_index_equal(result, exp) + + result = ci.map(Series([10, 20, 30], index=["A", "B", "C"])) + tm.assert_index_equal(result, exp) + + result = ci.map({"A": 10, "B": 20, "C": 30}) + tm.assert_index_equal(result, exp) + + +def test_map_with_categorical_series(): + # GH 12756 + a = Index([1, 2, 3, 4]) + b = Series(["even", "odd", "even", "odd"], dtype="category") + c = Series(["even", "odd", "even", "odd"]) + + exp = CategoricalIndex(["odd", "even", "odd", np.nan]) + tm.assert_index_equal(a.map(b), exp) + exp = Index(["odd", "even", "odd", np.nan]) + tm.assert_index_equal(a.map(c), exp) + + +@pytest.mark.parametrize( + ("data", "f", "expected"), + ( + ([1, 1, np.nan], pd.isna, CategoricalIndex([False, False, np.nan])), + ([1, 2, np.nan], pd.isna, Index([False, False, np.nan])), + ([1, 1, np.nan], {1: False}, CategoricalIndex([False, False, np.nan])), + ([1, 2, np.nan], {1: False, 2: False}, Index([False, False, np.nan])), + ( + [1, 1, np.nan], + Series([False, False]), + CategoricalIndex([False, False, np.nan]), + ), + ( + [1, 2, np.nan], + Series([False, False, False]), + Index([False, False, np.nan]), + ), + ), +) +def test_map_with_nan_ignore(data, f, expected): # GH 24241 + values = CategoricalIndex(data) + result = values.map(f, na_action="ignore") + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize( + ("data", "f", "expected"), + ( + ([1, 1, np.nan], pd.isna, Index([False, False, True])), + ([1, 2, np.nan], pd.isna, Index([False, False, True])), + ([1, 1, np.nan], {1: False}, CategoricalIndex([False, False, np.nan])), + ([1, 2, np.nan], {1: False, 2: False}, Index([False, False, np.nan])), + ( + [1, 1, np.nan], + Series([False, False]), + CategoricalIndex([False, False, np.nan]), + ), + ( + [1, 2, np.nan], + Series([False, False, False]), + Index([False, False, np.nan]), + ), + ), +) +def test_map_with_nan_none(data, f, expected): # GH 24241 + values = CategoricalIndex(data) + result = values.map(f, na_action=None) + tm.assert_index_equal(result, expected) + + +def test_map_with_dict_or_series(): + orig_values = ["a", "B", 1, "a"] + new_values = ["one", 2, 3.0, "one"] + cur_index = CategoricalIndex(orig_values, name="XXX") + expected = CategoricalIndex(new_values, name="XXX", categories=[3.0, 2, "one"]) + + mapper = Series(new_values[:-1], index=orig_values[:-1]) + result = cur_index.map(mapper) + # Order of categories in result can be different + tm.assert_index_equal(result, expected) + + mapper = dict(zip(orig_values[:-1], new_values[:-1])) + result = cur_index.map(mapper) + # Order of categories in result can be different + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_reindex.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_reindex.py new file mode 100644 index 0000000000000000000000000000000000000000..5b1f2b9fb159a6873c83e0a0a4e777913bb99fee --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_reindex.py @@ -0,0 +1,78 @@ +import numpy as np +import pytest + +from pandas import ( + Categorical, + CategoricalIndex, + Index, + Interval, +) +import pandas._testing as tm + + +class TestReindex: + def test_reindex_list_non_unique(self): + # GH#11586 + msg = "cannot reindex on an axis with duplicate labels" + ci = CategoricalIndex(["a", "b", "c", "a"]) + with pytest.raises(ValueError, match=msg): + ci.reindex(["a", "c"]) + + def test_reindex_categorical_non_unique(self): + msg = "cannot reindex on an axis with duplicate labels" + ci = CategoricalIndex(["a", "b", "c", "a"]) + with pytest.raises(ValueError, match=msg): + ci.reindex(Categorical(["a", "c"])) + + def test_reindex_list_non_unique_unused_category(self): + msg = "cannot reindex on an axis with duplicate labels" + ci = CategoricalIndex(["a", "b", "c", "a"], categories=["a", "b", "c", "d"]) + with pytest.raises(ValueError, match=msg): + ci.reindex(["a", "c"]) + + def test_reindex_categorical_non_unique_unused_category(self): + msg = "cannot reindex on an axis with duplicate labels" + ci = CategoricalIndex(["a", "b", "c", "a"], categories=["a", "b", "c", "d"]) + with pytest.raises(ValueError, match=msg): + ci.reindex(Categorical(["a", "c"])) + + def test_reindex_duplicate_target(self): + # See GH25459 + cat = CategoricalIndex(["a", "b", "c"], categories=["a", "b", "c", "d"]) + res, indexer = cat.reindex(["a", "c", "c"]) + exp = Index(["a", "c", "c"]) + tm.assert_index_equal(res, exp, exact=True) + tm.assert_numpy_array_equal(indexer, np.array([0, 2, 2], dtype=np.intp)) + + res, indexer = cat.reindex( + CategoricalIndex(["a", "c", "c"], categories=["a", "b", "c", "d"]) + ) + exp = CategoricalIndex(["a", "c", "c"], categories=["a", "b", "c", "d"]) + tm.assert_index_equal(res, exp, exact=True) + tm.assert_numpy_array_equal(indexer, np.array([0, 2, 2], dtype=np.intp)) + + def test_reindex_empty_index(self): + # See GH16770 + c = CategoricalIndex([]) + res, indexer = c.reindex(["a", "b"]) + tm.assert_index_equal(res, Index(["a", "b"]), exact=True) + tm.assert_numpy_array_equal(indexer, np.array([-1, -1], dtype=np.intp)) + + def test_reindex_categorical_added_category(self): + # GH 42424 + ci = CategoricalIndex( + [Interval(0, 1, closed="right"), Interval(1, 2, closed="right")], + ordered=True, + ) + ci_add = CategoricalIndex( + [ + Interval(0, 1, closed="right"), + Interval(1, 2, closed="right"), + Interval(2, 3, closed="right"), + Interval(3, 4, closed="right"), + ], + ordered=True, + ) + result, _ = ci.reindex(ci_add) + expected = ci_add + tm.assert_index_equal(expected, result) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_setops.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_setops.py new file mode 100644 index 0000000000000000000000000000000000000000..2e87b90efd54c8fcc4dcab7ec538d461add370de --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/categorical/test_setops.py @@ -0,0 +1,18 @@ +import numpy as np +import pytest + +from pandas import ( + CategoricalIndex, + Index, +) +import pandas._testing as tm + + +@pytest.mark.parametrize("na_value", [None, np.nan]) +def test_difference_with_na(na_value): + # GH 57318 + ci = CategoricalIndex(["a", "b", "c", None]) + other = Index(["c", na_value]) + result = ci.difference(other) + expected = CategoricalIndex(["a", "b"], categories=["a", "b", "c"]) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/conftest.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/conftest.py new file mode 100644 index 0000000000000000000000000000000000000000..bfb7acdcf481273e50c18540c141017deb52e094 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/conftest.py @@ -0,0 +1,41 @@ +import numpy as np +import pytest + +from pandas import ( + Series, + array, +) + + +@pytest.fixture(params=[None, False]) +def sort(request): + """ + Valid values for the 'sort' parameter used in the Index + setops methods (intersection, union, etc.) + + Caution: + Don't confuse this one with the "sort" fixture used + for DataFrame.append or concat. That one has + parameters [True, False]. + + We can't combine them as sort=True is not permitted + in the Index setops methods. + """ + return request.param + + +@pytest.fixture(params=["D", "3D", "-3D", "h", "2h", "-2h", "min", "2min", "s", "-3s"]) +def freq_sample(request): + """ + Valid values for 'freq' parameter used to create date_range and + timedelta_range.. + """ + return request.param + + +@pytest.fixture(params=[list, tuple, np.array, array, Series]) +def listlike_box(request): + """ + Types that may be passed as the indexer to searchsorted. + """ + return request.param diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimelike_/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimelike_/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimelike_/test_drop_duplicates.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimelike_/test_drop_duplicates.py new file mode 100644 index 0000000000000000000000000000000000000000..61a79c4ceabf9d68aab73ffd69e0f15ad842ff74 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimelike_/test_drop_duplicates.py @@ -0,0 +1,89 @@ +import numpy as np +import pytest + +from pandas import ( + PeriodIndex, + Series, + date_range, + period_range, + timedelta_range, +) +import pandas._testing as tm + + +class DropDuplicates: + def test_drop_duplicates_metadata(self, idx): + # GH#10115 + result = idx.drop_duplicates() + tm.assert_index_equal(idx, result) + assert idx.freq == result.freq + + idx_dup = idx.append(idx) + result = idx_dup.drop_duplicates() + + expected = idx + if not isinstance(idx, PeriodIndex): + # freq is reset except for PeriodIndex + assert idx_dup.freq is None + assert result.freq is None + expected = idx._with_freq(None) + else: + assert result.freq == expected.freq + + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "keep, expected, index", + [ + ( + "first", + np.concatenate(([False] * 10, [True] * 5)), + np.arange(0, 10, dtype=np.int64), + ), + ( + "last", + np.concatenate(([True] * 5, [False] * 10)), + np.arange(5, 15, dtype=np.int64), + ), + ( + False, + np.concatenate(([True] * 5, [False] * 5, [True] * 5)), + np.arange(5, 10, dtype=np.int64), + ), + ], + ) + def test_drop_duplicates(self, keep, expected, index, idx): + # to check Index/Series compat + idx = idx.append(idx[:5]) + + tm.assert_numpy_array_equal(idx.duplicated(keep=keep), expected) + expected = idx[~expected] + + result = idx.drop_duplicates(keep=keep) + tm.assert_index_equal(result, expected) + + result = Series(idx).drop_duplicates(keep=keep) + expected = Series(expected, index=index) + tm.assert_series_equal(result, expected) + + +class TestDropDuplicatesPeriodIndex(DropDuplicates): + @pytest.fixture(params=["D", "3D", "h", "2h", "min", "2min", "s", "3s"]) + def freq(self, request): + return request.param + + @pytest.fixture + def idx(self, freq): + return period_range("2011-01-01", periods=10, freq=freq, name="idx") + + +class TestDropDuplicatesDatetimeIndex(DropDuplicates): + @pytest.fixture + def idx(self, freq_sample): + return date_range("2011-01-01", freq=freq_sample, periods=10, name="idx") + + +class TestDropDuplicatesTimedeltaIndex(DropDuplicates): + @pytest.fixture + def idx(self, freq_sample): + return timedelta_range("1 day", periods=10, freq=freq_sample, name="idx") diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimelike_/test_equals.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimelike_/test_equals.py new file mode 100644 index 0000000000000000000000000000000000000000..fc9fbd33d0d285fe7635c23c598318208bb58561 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimelike_/test_equals.py @@ -0,0 +1,181 @@ +""" +Tests shared for DatetimeIndex/TimedeltaIndex/PeriodIndex +""" +from datetime import ( + datetime, + timedelta, +) + +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + CategoricalIndex, + DatetimeIndex, + Index, + PeriodIndex, + TimedeltaIndex, + date_range, + period_range, + timedelta_range, +) +import pandas._testing as tm + + +class EqualsTests: + def test_not_equals_numeric(self, index): + assert not index.equals(Index(index.asi8)) + assert not index.equals(Index(index.asi8.astype("u8"))) + assert not index.equals(Index(index.asi8).astype("f8")) + + def test_equals(self, index): + assert index.equals(index) + assert index.equals(index.astype(object)) + assert index.equals(CategoricalIndex(index)) + assert index.equals(CategoricalIndex(index.astype(object))) + + def test_not_equals_non_arraylike(self, index): + assert not index.equals(list(index)) + + def test_not_equals_strings(self, index): + other = Index([str(x) for x in index], dtype=object) + assert not index.equals(other) + assert not index.equals(CategoricalIndex(other)) + + def test_not_equals_misc_strs(self, index): + other = Index(list("abc")) + assert not index.equals(other) + + +class TestPeriodIndexEquals(EqualsTests): + @pytest.fixture + def index(self): + return period_range("2013-01-01", periods=5, freq="D") + + # TODO: de-duplicate with other test_equals2 methods + @pytest.mark.parametrize("freq", ["D", "M"]) + def test_equals2(self, freq): + # GH#13107 + idx = PeriodIndex(["2011-01-01", "2011-01-02", "NaT"], freq=freq) + assert idx.equals(idx) + assert idx.equals(idx.copy()) + assert idx.equals(idx.astype(object)) + assert idx.astype(object).equals(idx) + assert idx.astype(object).equals(idx.astype(object)) + assert not idx.equals(list(idx)) + assert not idx.equals(pd.Series(idx)) + + idx2 = PeriodIndex(["2011-01-01", "2011-01-02", "NaT"], freq="h") + assert not idx.equals(idx2) + assert not idx.equals(idx2.copy()) + assert not idx.equals(idx2.astype(object)) + assert not idx.astype(object).equals(idx2) + assert not idx.equals(list(idx2)) + assert not idx.equals(pd.Series(idx2)) + + # same internal, different tz + idx3 = PeriodIndex._simple_new( + idx._values._simple_new(idx._values.asi8, dtype=pd.PeriodDtype("h")) + ) + tm.assert_numpy_array_equal(idx.asi8, idx3.asi8) + assert not idx.equals(idx3) + assert not idx.equals(idx3.copy()) + assert not idx.equals(idx3.astype(object)) + assert not idx.astype(object).equals(idx3) + assert not idx.equals(list(idx3)) + assert not idx.equals(pd.Series(idx3)) + + +class TestDatetimeIndexEquals(EqualsTests): + @pytest.fixture + def index(self): + return date_range("2013-01-01", periods=5) + + def test_equals2(self): + # GH#13107 + idx = DatetimeIndex(["2011-01-01", "2011-01-02", "NaT"]) + assert idx.equals(idx) + assert idx.equals(idx.copy()) + assert idx.equals(idx.astype(object)) + assert idx.astype(object).equals(idx) + assert idx.astype(object).equals(idx.astype(object)) + assert not idx.equals(list(idx)) + assert not idx.equals(pd.Series(idx)) + + idx2 = DatetimeIndex(["2011-01-01", "2011-01-02", "NaT"], tz="US/Pacific") + assert not idx.equals(idx2) + assert not idx.equals(idx2.copy()) + assert not idx.equals(idx2.astype(object)) + assert not idx.astype(object).equals(idx2) + assert not idx.equals(list(idx2)) + assert not idx.equals(pd.Series(idx2)) + + # same internal, different tz + idx3 = DatetimeIndex(idx.asi8, tz="US/Pacific") + tm.assert_numpy_array_equal(idx.asi8, idx3.asi8) + assert not idx.equals(idx3) + assert not idx.equals(idx3.copy()) + assert not idx.equals(idx3.astype(object)) + assert not idx.astype(object).equals(idx3) + assert not idx.equals(list(idx3)) + assert not idx.equals(pd.Series(idx3)) + + # check that we do not raise when comparing with OutOfBounds objects + oob = Index([datetime(2500, 1, 1)] * 3, dtype=object) + assert not idx.equals(oob) + assert not idx2.equals(oob) + assert not idx3.equals(oob) + + # check that we do not raise when comparing with OutOfBounds dt64 + oob2 = oob.map(np.datetime64) + assert not idx.equals(oob2) + assert not idx2.equals(oob2) + assert not idx3.equals(oob2) + + @pytest.mark.parametrize("freq", ["B", "C"]) + def test_not_equals_bday(self, freq): + rng = date_range("2009-01-01", "2010-01-01", freq=freq) + assert not rng.equals(list(rng)) + + +class TestTimedeltaIndexEquals(EqualsTests): + @pytest.fixture + def index(self): + return timedelta_range("1 day", periods=10) + + def test_equals2(self): + # GH#13107 + idx = TimedeltaIndex(["1 days", "2 days", "NaT"]) + assert idx.equals(idx) + assert idx.equals(idx.copy()) + assert idx.equals(idx.astype(object)) + assert idx.astype(object).equals(idx) + assert idx.astype(object).equals(idx.astype(object)) + assert not idx.equals(list(idx)) + assert not idx.equals(pd.Series(idx)) + + idx2 = TimedeltaIndex(["2 days", "1 days", "NaT"]) + assert not idx.equals(idx2) + assert not idx.equals(idx2.copy()) + assert not idx.equals(idx2.astype(object)) + assert not idx.astype(object).equals(idx2) + assert not idx.astype(object).equals(idx2.astype(object)) + assert not idx.equals(list(idx2)) + assert not idx.equals(pd.Series(idx2)) + + # Check that we dont raise OverflowError on comparisons outside the + # implementation range GH#28532 + oob = Index([timedelta(days=10**6)] * 3, dtype=object) + assert not idx.equals(oob) + assert not idx2.equals(oob) + + oob2 = Index([np.timedelta64(x) for x in oob], dtype=object) + assert (oob == oob2).all() + assert not idx.equals(oob2) + assert not idx2.equals(oob2) + + oob3 = oob.map(np.timedelta64) + assert (oob3 == oob).all() + assert not idx.equals(oob3) + assert not idx2.equals(oob3) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimelike_/test_indexing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimelike_/test_indexing.py new file mode 100644 index 0000000000000000000000000000000000000000..7b2c81aaf17de3785e62a2d989394259b2496085 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimelike_/test_indexing.py @@ -0,0 +1,45 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + DatetimeIndex, + Index, +) +import pandas._testing as tm + +dtlike_dtypes = [ + np.dtype("timedelta64[ns]"), + np.dtype("datetime64[ns]"), + pd.DatetimeTZDtype("ns", "Asia/Tokyo"), + pd.PeriodDtype("ns"), +] + + +@pytest.mark.parametrize("ldtype", dtlike_dtypes) +@pytest.mark.parametrize("rdtype", dtlike_dtypes) +def test_get_indexer_non_unique_wrong_dtype(ldtype, rdtype): + vals = np.tile(3600 * 10**9 * np.arange(3, dtype=np.int64), 2) + + def construct(dtype): + if dtype is dtlike_dtypes[-1]: + # PeriodArray will try to cast ints to strings + return DatetimeIndex(vals).astype(dtype) + return Index(vals, dtype=dtype) + + left = construct(ldtype) + right = construct(rdtype) + + result = left.get_indexer_non_unique(right) + + if ldtype is rdtype: + ex1 = np.array([0, 3, 1, 4, 2, 5] * 2, dtype=np.intp) + ex2 = np.array([], dtype=np.intp) + tm.assert_numpy_array_equal(result[0], ex1) + tm.assert_numpy_array_equal(result[1], ex2) + + else: + no_matches = np.array([-1] * 6, dtype=np.intp) + missing = np.arange(6, dtype=np.intp) + tm.assert_numpy_array_equal(result[0], no_matches) + tm.assert_numpy_array_equal(result[1], missing) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimelike_/test_is_monotonic.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimelike_/test_is_monotonic.py new file mode 100644 index 0000000000000000000000000000000000000000..b0e42e660b751cddaca74c4574e9588e8ac8c782 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimelike_/test_is_monotonic.py @@ -0,0 +1,46 @@ +from pandas import ( + Index, + NaT, + date_range, +) + + +def test_is_monotonic_with_nat(): + # GH#31437 + # PeriodIndex.is_monotonic_increasing should behave analogously to DatetimeIndex, + # in particular never be monotonic when we have NaT + dti = date_range("2016-01-01", periods=3) + pi = dti.to_period("D") + tdi = Index(dti.view("timedelta64[ns]")) + + for obj in [pi, pi._engine, dti, dti._engine, tdi, tdi._engine]: + if isinstance(obj, Index): + # i.e. not Engines + assert obj.is_monotonic_increasing + assert obj.is_monotonic_increasing + assert not obj.is_monotonic_decreasing + assert obj.is_unique + + dti1 = dti.insert(0, NaT) + pi1 = dti1.to_period("D") + tdi1 = Index(dti1.view("timedelta64[ns]")) + + for obj in [pi1, pi1._engine, dti1, dti1._engine, tdi1, tdi1._engine]: + if isinstance(obj, Index): + # i.e. not Engines + assert not obj.is_monotonic_increasing + assert not obj.is_monotonic_increasing + assert not obj.is_monotonic_decreasing + assert obj.is_unique + + dti2 = dti.insert(3, NaT) + pi2 = dti2.to_period("h") + tdi2 = Index(dti2.view("timedelta64[ns]")) + + for obj in [pi2, pi2._engine, dti2, dti2._engine, tdi2, tdi2._engine]: + if isinstance(obj, Index): + # i.e. not Engines + assert not obj.is_monotonic_increasing + assert not obj.is_monotonic_increasing + assert not obj.is_monotonic_decreasing + assert obj.is_unique diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimelike_/test_nat.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimelike_/test_nat.py new file mode 100644 index 0000000000000000000000000000000000000000..50cf29d0163555876eb7b1914bbd4ee45bc2285e --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimelike_/test_nat.py @@ -0,0 +1,53 @@ +import numpy as np +import pytest + +from pandas import ( + DatetimeIndex, + NaT, + PeriodIndex, + TimedeltaIndex, +) +import pandas._testing as tm + + +class NATests: + def test_nat(self, index_without_na): + empty_index = index_without_na[:0] + + index_with_na = index_without_na.copy(deep=True) + index_with_na._data[1] = NaT + + assert empty_index._na_value is NaT + assert index_with_na._na_value is NaT + assert index_without_na._na_value is NaT + + idx = index_without_na + assert idx._can_hold_na + + tm.assert_numpy_array_equal(idx._isnan, np.array([False, False])) + assert idx.hasnans is False + + idx = index_with_na + assert idx._can_hold_na + + tm.assert_numpy_array_equal(idx._isnan, np.array([False, True])) + assert idx.hasnans is True + + +class TestDatetimeIndexNA(NATests): + @pytest.fixture + def index_without_na(self, tz_naive_fixture): + tz = tz_naive_fixture + return DatetimeIndex(["2011-01-01", "2011-01-02"], tz=tz) + + +class TestTimedeltaIndexNA(NATests): + @pytest.fixture + def index_without_na(self): + return TimedeltaIndex(["1 days", "2 days"]) + + +class TestPeriodIndexNA(NATests): + @pytest.fixture + def index_without_na(self): + return PeriodIndex(["2011-01-01", "2011-01-02"], freq="D") diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimelike_/test_sort_values.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimelike_/test_sort_values.py new file mode 100644 index 0000000000000000000000000000000000000000..a2c349c8b0ef679b9d32411efd8a0d393b9d5e9d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimelike_/test_sort_values.py @@ -0,0 +1,315 @@ +import numpy as np +import pytest + +from pandas import ( + DatetimeIndex, + Index, + NaT, + PeriodIndex, + TimedeltaIndex, + timedelta_range, +) +import pandas._testing as tm + + +def check_freq_ascending(ordered, orig, ascending): + """ + Check the expected freq on a PeriodIndex/DatetimeIndex/TimedeltaIndex + when the original index is generated (or generate-able) with + period_range/date_range/timedelta_range. + """ + if isinstance(ordered, PeriodIndex): + assert ordered.freq == orig.freq + elif isinstance(ordered, (DatetimeIndex, TimedeltaIndex)): + if ascending: + assert ordered.freq.n == orig.freq.n + else: + assert ordered.freq.n == -1 * orig.freq.n + + +def check_freq_nonmonotonic(ordered, orig): + """ + Check the expected freq on a PeriodIndex/DatetimeIndex/TimedeltaIndex + when the original index is _not_ generated (or generate-able) with + period_range/date_range//timedelta_range. + """ + if isinstance(ordered, PeriodIndex): + assert ordered.freq == orig.freq + elif isinstance(ordered, (DatetimeIndex, TimedeltaIndex)): + assert ordered.freq is None + + +class TestSortValues: + @pytest.fixture(params=[DatetimeIndex, TimedeltaIndex, PeriodIndex]) + def non_monotonic_idx(self, request): + if request.param is DatetimeIndex: + return DatetimeIndex(["2000-01-04", "2000-01-01", "2000-01-02"]) + elif request.param is PeriodIndex: + dti = DatetimeIndex(["2000-01-04", "2000-01-01", "2000-01-02"]) + return dti.to_period("D") + else: + return TimedeltaIndex( + ["1 day 00:00:05", "1 day 00:00:01", "1 day 00:00:02"] + ) + + def test_argmin_argmax(self, non_monotonic_idx): + assert non_monotonic_idx.argmin() == 1 + assert non_monotonic_idx.argmax() == 0 + + def test_sort_values(self, non_monotonic_idx): + idx = non_monotonic_idx + ordered = idx.sort_values() + assert ordered.is_monotonic_increasing + ordered = idx.sort_values(ascending=False) + assert ordered[::-1].is_monotonic_increasing + + ordered, dexer = idx.sort_values(return_indexer=True) + assert ordered.is_monotonic_increasing + tm.assert_numpy_array_equal(dexer, np.array([1, 2, 0], dtype=np.intp)) + + ordered, dexer = idx.sort_values(return_indexer=True, ascending=False) + assert ordered[::-1].is_monotonic_increasing + tm.assert_numpy_array_equal(dexer, np.array([0, 2, 1], dtype=np.intp)) + + def check_sort_values_with_freq(self, idx): + ordered = idx.sort_values() + tm.assert_index_equal(ordered, idx) + check_freq_ascending(ordered, idx, True) + + ordered = idx.sort_values(ascending=False) + expected = idx[::-1] + tm.assert_index_equal(ordered, expected) + check_freq_ascending(ordered, idx, False) + + ordered, indexer = idx.sort_values(return_indexer=True) + tm.assert_index_equal(ordered, idx) + tm.assert_numpy_array_equal(indexer, np.array([0, 1, 2], dtype=np.intp)) + check_freq_ascending(ordered, idx, True) + + ordered, indexer = idx.sort_values(return_indexer=True, ascending=False) + expected = idx[::-1] + tm.assert_index_equal(ordered, expected) + tm.assert_numpy_array_equal(indexer, np.array([2, 1, 0], dtype=np.intp)) + check_freq_ascending(ordered, idx, False) + + @pytest.mark.parametrize("freq", ["D", "h"]) + def test_sort_values_with_freq_timedeltaindex(self, freq): + # GH#10295 + idx = timedelta_range(start=f"1{freq}", periods=3, freq=freq).rename("idx") + + self.check_sort_values_with_freq(idx) + + @pytest.mark.parametrize( + "idx", + [ + DatetimeIndex( + ["2011-01-01", "2011-01-02", "2011-01-03"], freq="D", name="idx" + ), + DatetimeIndex( + ["2011-01-01 09:00", "2011-01-01 10:00", "2011-01-01 11:00"], + freq="h", + name="tzidx", + tz="Asia/Tokyo", + ), + ], + ) + def test_sort_values_with_freq_datetimeindex(self, idx): + self.check_sort_values_with_freq(idx) + + @pytest.mark.parametrize("freq", ["D", "2D", "4D"]) + def test_sort_values_with_freq_periodindex(self, freq): + # here with_freq refers to being period_range-like + idx = PeriodIndex( + ["2011-01-01", "2011-01-02", "2011-01-03"], freq=freq, name="idx" + ) + self.check_sort_values_with_freq(idx) + + @pytest.mark.parametrize( + "idx", + [ + PeriodIndex(["2011", "2012", "2013"], name="pidx", freq="Y"), + Index([2011, 2012, 2013], name="idx"), # for compatibility check + ], + ) + def test_sort_values_with_freq_periodindex2(self, idx): + # here with_freq indicates this is period_range-like + self.check_sort_values_with_freq(idx) + + def check_sort_values_without_freq(self, idx, expected): + ordered = idx.sort_values(na_position="first") + tm.assert_index_equal(ordered, expected) + check_freq_nonmonotonic(ordered, idx) + + if not idx.isna().any(): + ordered = idx.sort_values() + tm.assert_index_equal(ordered, expected) + check_freq_nonmonotonic(ordered, idx) + + ordered = idx.sort_values(ascending=False) + tm.assert_index_equal(ordered, expected[::-1]) + check_freq_nonmonotonic(ordered, idx) + + ordered, indexer = idx.sort_values(return_indexer=True, na_position="first") + tm.assert_index_equal(ordered, expected) + + exp = np.array([0, 4, 3, 1, 2], dtype=np.intp) + tm.assert_numpy_array_equal(indexer, exp) + check_freq_nonmonotonic(ordered, idx) + + if not idx.isna().any(): + ordered, indexer = idx.sort_values(return_indexer=True) + tm.assert_index_equal(ordered, expected) + + exp = np.array([0, 4, 3, 1, 2], dtype=np.intp) + tm.assert_numpy_array_equal(indexer, exp) + check_freq_nonmonotonic(ordered, idx) + + ordered, indexer = idx.sort_values(return_indexer=True, ascending=False) + tm.assert_index_equal(ordered, expected[::-1]) + + exp = np.array([2, 1, 3, 0, 4], dtype=np.intp) + tm.assert_numpy_array_equal(indexer, exp) + check_freq_nonmonotonic(ordered, idx) + + def test_sort_values_without_freq_timedeltaindex(self): + # GH#10295 + + idx = TimedeltaIndex( + ["1 hour", "3 hour", "5 hour", "2 hour ", "1 hour"], name="idx1" + ) + expected = TimedeltaIndex( + ["1 hour", "1 hour", "2 hour", "3 hour", "5 hour"], name="idx1" + ) + self.check_sort_values_without_freq(idx, expected) + + @pytest.mark.parametrize( + "index_dates,expected_dates", + [ + ( + ["2011-01-01", "2011-01-03", "2011-01-05", "2011-01-02", "2011-01-01"], + ["2011-01-01", "2011-01-01", "2011-01-02", "2011-01-03", "2011-01-05"], + ), + ( + ["2011-01-01", "2011-01-03", "2011-01-05", "2011-01-02", "2011-01-01"], + ["2011-01-01", "2011-01-01", "2011-01-02", "2011-01-03", "2011-01-05"], + ), + ( + [NaT, "2011-01-03", "2011-01-05", "2011-01-02", NaT], + [NaT, NaT, "2011-01-02", "2011-01-03", "2011-01-05"], + ), + ], + ) + def test_sort_values_without_freq_datetimeindex( + self, index_dates, expected_dates, tz_naive_fixture + ): + tz = tz_naive_fixture + + # without freq + idx = DatetimeIndex(index_dates, tz=tz, name="idx") + expected = DatetimeIndex(expected_dates, tz=tz, name="idx") + + self.check_sort_values_without_freq(idx, expected) + + @pytest.mark.parametrize( + "idx,expected", + [ + ( + PeriodIndex( + [ + "2011-01-01", + "2011-01-03", + "2011-01-05", + "2011-01-02", + "2011-01-01", + ], + freq="D", + name="idx1", + ), + PeriodIndex( + [ + "2011-01-01", + "2011-01-01", + "2011-01-02", + "2011-01-03", + "2011-01-05", + ], + freq="D", + name="idx1", + ), + ), + ( + PeriodIndex( + [ + "2011-01-01", + "2011-01-03", + "2011-01-05", + "2011-01-02", + "2011-01-01", + ], + freq="D", + name="idx2", + ), + PeriodIndex( + [ + "2011-01-01", + "2011-01-01", + "2011-01-02", + "2011-01-03", + "2011-01-05", + ], + freq="D", + name="idx2", + ), + ), + ( + PeriodIndex( + [NaT, "2011-01-03", "2011-01-05", "2011-01-02", NaT], + freq="D", + name="idx3", + ), + PeriodIndex( + [NaT, NaT, "2011-01-02", "2011-01-03", "2011-01-05"], + freq="D", + name="idx3", + ), + ), + ( + PeriodIndex( + ["2011", "2013", "2015", "2012", "2011"], name="pidx", freq="Y" + ), + PeriodIndex( + ["2011", "2011", "2012", "2013", "2015"], name="pidx", freq="Y" + ), + ), + ( + # For compatibility check + Index([2011, 2013, 2015, 2012, 2011], name="idx"), + Index([2011, 2011, 2012, 2013, 2015], name="idx"), + ), + ], + ) + def test_sort_values_without_freq_periodindex(self, idx, expected): + # here without_freq means not generateable by period_range + self.check_sort_values_without_freq(idx, expected) + + def test_sort_values_without_freq_periodindex_nat(self): + # doesn't quite fit into check_sort_values_without_freq + idx = PeriodIndex(["2011", "2013", "NaT", "2011"], name="pidx", freq="D") + expected = PeriodIndex(["NaT", "2011", "2011", "2013"], name="pidx", freq="D") + + ordered = idx.sort_values(na_position="first") + tm.assert_index_equal(ordered, expected) + check_freq_nonmonotonic(ordered, idx) + + ordered = idx.sort_values(ascending=False) + tm.assert_index_equal(ordered, expected[::-1]) + check_freq_nonmonotonic(ordered, idx) + + +def test_order_stability_compat(): + # GH#35922. sort_values is stable both for normal and datetime-like Index + pidx = PeriodIndex(["2011", "2013", "2015", "2012", "2011"], name="pidx", freq="Y") + iidx = Index([2011, 2013, 2015, 2012, 2011], name="idx") + ordered1, indexer1 = pidx.sort_values(return_indexer=True, ascending=False) + ordered2, indexer2 = iidx.sort_values(return_indexer=True, ascending=False) + tm.assert_numpy_array_equal(indexer1, indexer2) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimelike_/test_value_counts.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimelike_/test_value_counts.py new file mode 100644 index 0000000000000000000000000000000000000000..069e354a364c9343c595da9d18ee7c04eec04f43 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimelike_/test_value_counts.py @@ -0,0 +1,103 @@ +import numpy as np + +from pandas import ( + DatetimeIndex, + NaT, + PeriodIndex, + Series, + TimedeltaIndex, + date_range, + period_range, + timedelta_range, +) +import pandas._testing as tm + + +class TestValueCounts: + # GH#7735 + + def test_value_counts_unique_datetimeindex(self, tz_naive_fixture): + tz = tz_naive_fixture + orig = date_range("2011-01-01 09:00", freq="h", periods=10, tz=tz) + self._check_value_counts_with_repeats(orig) + + def test_value_counts_unique_timedeltaindex(self): + orig = timedelta_range("1 days 09:00:00", freq="h", periods=10) + self._check_value_counts_with_repeats(orig) + + def test_value_counts_unique_periodindex(self): + orig = period_range("2011-01-01 09:00", freq="h", periods=10) + self._check_value_counts_with_repeats(orig) + + def _check_value_counts_with_repeats(self, orig): + # create repeated values, 'n'th element is repeated by n+1 times + idx = type(orig)( + np.repeat(orig._values, range(1, len(orig) + 1)), dtype=orig.dtype + ) + + exp_idx = orig[::-1] + if not isinstance(exp_idx, PeriodIndex): + exp_idx = exp_idx._with_freq(None) + expected = Series(range(10, 0, -1), index=exp_idx, dtype="int64", name="count") + + for obj in [idx, Series(idx)]: + tm.assert_series_equal(obj.value_counts(), expected) + + tm.assert_index_equal(idx.unique(), orig) + + def test_value_counts_unique_datetimeindex2(self, tz_naive_fixture): + tz = tz_naive_fixture + idx = DatetimeIndex( + [ + "2013-01-01 09:00", + "2013-01-01 09:00", + "2013-01-01 09:00", + "2013-01-01 08:00", + "2013-01-01 08:00", + NaT, + ], + tz=tz, + ) + self._check_value_counts_dropna(idx) + + def test_value_counts_unique_timedeltaindex2(self): + idx = TimedeltaIndex( + [ + "1 days 09:00:00", + "1 days 09:00:00", + "1 days 09:00:00", + "1 days 08:00:00", + "1 days 08:00:00", + NaT, + ] + ) + self._check_value_counts_dropna(idx) + + def test_value_counts_unique_periodindex2(self): + idx = PeriodIndex( + [ + "2013-01-01 09:00", + "2013-01-01 09:00", + "2013-01-01 09:00", + "2013-01-01 08:00", + "2013-01-01 08:00", + NaT, + ], + freq="h", + ) + self._check_value_counts_dropna(idx) + + def _check_value_counts_dropna(self, idx): + exp_idx = idx[[2, 3]] + expected = Series([3, 2], index=exp_idx, name="count") + + for obj in [idx, Series(idx)]: + tm.assert_series_equal(obj.value_counts(), expected) + + exp_idx = idx[[2, 3, -1]] + expected = Series([3, 2, 1], index=exp_idx, name="count") + + for obj in [idx, Series(idx)]: + tm.assert_series_equal(obj.value_counts(dropna=False), expected) + + tm.assert_index_equal(idx.unique(), exp_idx) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_asof.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_asof.py new file mode 100644 index 0000000000000000000000000000000000000000..dc92f533087bc3226727fac1810269520e1c4d1f --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_asof.py @@ -0,0 +1,30 @@ +from datetime import timedelta + +from pandas import ( + Index, + Timestamp, + date_range, + isna, +) + + +class TestAsOf: + def test_asof_partial(self): + index = date_range("2010-01-01", periods=2, freq="ME") + expected = Timestamp("2010-02-28") + result = index.asof("2010-02") + assert result == expected + assert not isinstance(result, Index) + + def test_asof(self): + index = date_range("2020-01-01", periods=10) + + dt = index[0] + assert index.asof(dt) == dt + assert isna(index.asof(dt - timedelta(1))) + + dt = index[-1] + assert index.asof(dt + timedelta(1)) == dt + + dt = index[0].to_pydatetime() + assert isinstance(index.asof(dt), Timestamp) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_astype.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_astype.py new file mode 100644 index 0000000000000000000000000000000000000000..a9bcae625e494b03b8be3c272df96dbfa68ddd1f --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_astype.py @@ -0,0 +1,338 @@ +from datetime import datetime + +import dateutil +import numpy as np +import pytest +import pytz + +import pandas as pd +from pandas import ( + DatetimeIndex, + Index, + NaT, + PeriodIndex, + Timestamp, + date_range, +) +import pandas._testing as tm + + +class TestDatetimeIndex: + @pytest.mark.parametrize("tzstr", ["US/Eastern", "dateutil/US/Eastern"]) + def test_dti_astype_asobject_around_dst_transition(self, tzstr): + # GH#1345 + + # dates around a dst transition + rng = date_range("2/13/2010", "5/6/2010", tz=tzstr) + + objs = rng.astype(object) + for i, x in enumerate(objs): + exval = rng[i] + assert x == exval + assert x.tzinfo == exval.tzinfo + + objs = rng.astype(object) + for i, x in enumerate(objs): + exval = rng[i] + assert x == exval + assert x.tzinfo == exval.tzinfo + + def test_astype(self): + # GH 13149, GH 13209 + idx = DatetimeIndex( + ["2016-05-16", "NaT", NaT, np.nan], dtype="M8[ns]", name="idx" + ) + + result = idx.astype(object) + expected = Index( + [Timestamp("2016-05-16")] + [NaT] * 3, dtype=object, name="idx" + ) + tm.assert_index_equal(result, expected) + + result = idx.astype(np.int64) + expected = Index( + [1463356800000000000] + [-9223372036854775808] * 3, + dtype=np.int64, + name="idx", + ) + tm.assert_index_equal(result, expected) + + def test_astype2(self): + rng = date_range("1/1/2000", periods=10, name="idx") + result = rng.astype("i8") + tm.assert_index_equal(result, Index(rng.asi8, name="idx")) + tm.assert_numpy_array_equal(result.values, rng.asi8) + + def test_astype_uint(self): + arr = date_range("2000", periods=2, name="idx") + + with pytest.raises(TypeError, match=r"Do obj.astype\('int64'\)"): + arr.astype("uint64") + with pytest.raises(TypeError, match=r"Do obj.astype\('int64'\)"): + arr.astype("uint32") + + def test_astype_with_tz(self): + # with tz + rng = date_range("1/1/2000", periods=10, tz="US/Eastern") + msg = "Cannot use .astype to convert from timezone-aware" + with pytest.raises(TypeError, match=msg): + # deprecated + rng.astype("datetime64[ns]") + with pytest.raises(TypeError, match=msg): + # check DatetimeArray while we're here deprecated + rng._data.astype("datetime64[ns]") + + def test_astype_tzaware_to_tzaware(self): + # GH 18951: tz-aware to tz-aware + idx = date_range("20170101", periods=4, tz="US/Pacific") + result = idx.astype("datetime64[ns, US/Eastern]") + expected = date_range("20170101 03:00:00", periods=4, tz="US/Eastern") + tm.assert_index_equal(result, expected) + assert result.freq == expected.freq + + def test_astype_tznaive_to_tzaware(self): + # GH 18951: tz-naive to tz-aware + idx = date_range("20170101", periods=4) + idx = idx._with_freq(None) # tz_localize does not preserve freq + msg = "Cannot use .astype to convert from timezone-naive" + with pytest.raises(TypeError, match=msg): + # dt64->dt64tz deprecated + idx.astype("datetime64[ns, US/Eastern]") + with pytest.raises(TypeError, match=msg): + # dt64->dt64tz deprecated + idx._data.astype("datetime64[ns, US/Eastern]") + + def test_astype_str_nat(self, using_infer_string): + # GH 13149, GH 13209 + # verify that we are returning NaT as a string (and not unicode) + + idx = DatetimeIndex(["2016-05-16", "NaT", NaT, np.nan]) + result = idx.astype(str) + if using_infer_string: + expected = Index(["2016-05-16", None, None, None], dtype="str") + else: + expected = Index(["2016-05-16", "NaT", "NaT", "NaT"], dtype=object) + tm.assert_index_equal(result, expected) + + def test_astype_str(self): + # test astype string - #10442 + dti = date_range("2012-01-01", periods=4, name="test_name") + result = dti.astype(str) + expected = Index( + ["2012-01-01", "2012-01-02", "2012-01-03", "2012-01-04"], + name="test_name", + dtype="str", + ) + tm.assert_index_equal(result, expected) + + def test_astype_str_tz_and_name(self): + # test astype string with tz and name + dti = date_range("2012-01-01", periods=3, name="test_name", tz="US/Eastern") + result = dti.astype(str) + expected = Index( + [ + "2012-01-01 00:00:00-05:00", + "2012-01-02 00:00:00-05:00", + "2012-01-03 00:00:00-05:00", + ], + name="test_name", + dtype="str", + ) + tm.assert_index_equal(result, expected) + + def test_astype_str_freq_and_name(self): + # test astype string with freqH and name + dti = date_range("1/1/2011", periods=3, freq="h", name="test_name") + result = dti.astype(str) + expected = Index( + ["2011-01-01 00:00:00", "2011-01-01 01:00:00", "2011-01-01 02:00:00"], + name="test_name", + dtype="str", + ) + tm.assert_index_equal(result, expected) + + def test_astype_str_freq_and_tz(self): + # test astype string with freqH and timezone + dti = date_range( + "3/6/2012 00:00", periods=2, freq="h", tz="Europe/London", name="test_name" + ) + result = dti.astype(str) + expected = Index( + ["2012-03-06 00:00:00+00:00", "2012-03-06 01:00:00+00:00"], + dtype="str", + name="test_name", + ) + tm.assert_index_equal(result, expected) + + def test_astype_datetime64(self): + # GH 13149, GH 13209 + idx = DatetimeIndex( + ["2016-05-16", "NaT", NaT, np.nan], dtype="M8[ns]", name="idx" + ) + + result = idx.astype("datetime64[ns]") + tm.assert_index_equal(result, idx) + assert result is not idx + + result = idx.astype("datetime64[ns]", copy=False) + tm.assert_index_equal(result, idx) + assert result is idx + + idx_tz = DatetimeIndex(["2016-05-16", "NaT", NaT, np.nan], tz="EST", name="idx") + msg = "Cannot use .astype to convert from timezone-aware" + with pytest.raises(TypeError, match=msg): + # dt64tz->dt64 deprecated + result = idx_tz.astype("datetime64[ns]") + + def test_astype_object(self): + rng = date_range("1/1/2000", periods=20) + + casted = rng.astype("O") + exp_values = list(rng) + + tm.assert_index_equal(casted, Index(exp_values, dtype=np.object_)) + assert casted.tolist() == exp_values + + @pytest.mark.parametrize("tz", [None, "Asia/Tokyo"]) + def test_astype_object_tz(self, tz): + idx = date_range(start="2013-01-01", periods=4, freq="ME", name="idx", tz=tz) + expected_list = [ + Timestamp("2013-01-31", tz=tz), + Timestamp("2013-02-28", tz=tz), + Timestamp("2013-03-31", tz=tz), + Timestamp("2013-04-30", tz=tz), + ] + expected = Index(expected_list, dtype=object, name="idx") + result = idx.astype(object) + tm.assert_index_equal(result, expected) + assert idx.tolist() == expected_list + + def test_astype_object_with_nat(self): + idx = DatetimeIndex( + [datetime(2013, 1, 1), datetime(2013, 1, 2), NaT, datetime(2013, 1, 4)], + name="idx", + ) + expected_list = [ + Timestamp("2013-01-01"), + Timestamp("2013-01-02"), + NaT, + Timestamp("2013-01-04"), + ] + expected = Index(expected_list, dtype=object, name="idx") + result = idx.astype(object) + tm.assert_index_equal(result, expected) + assert idx.tolist() == expected_list + + @pytest.mark.parametrize( + "dtype", + [float, "timedelta64", "timedelta64[ns]", "datetime64", "datetime64[D]"], + ) + def test_astype_raises(self, dtype): + # GH 13149, GH 13209 + idx = DatetimeIndex(["2016-05-16", "NaT", NaT, np.nan]) + msg = "Cannot cast DatetimeIndex to dtype" + if dtype == "datetime64": + msg = "Casting to unit-less dtype 'datetime64' is not supported" + with pytest.raises(TypeError, match=msg): + idx.astype(dtype) + + def test_index_convert_to_datetime_array(self): + def _check_rng(rng): + converted = rng.to_pydatetime() + assert isinstance(converted, np.ndarray) + for x, stamp in zip(converted, rng): + assert isinstance(x, datetime) + assert x == stamp.to_pydatetime() + assert x.tzinfo == stamp.tzinfo + + rng = date_range("20090415", "20090519") + rng_eastern = date_range("20090415", "20090519", tz="US/Eastern") + rng_utc = date_range("20090415", "20090519", tz="utc") + + _check_rng(rng) + _check_rng(rng_eastern) + _check_rng(rng_utc) + + def test_index_convert_to_datetime_array_explicit_pytz(self): + def _check_rng(rng): + converted = rng.to_pydatetime() + assert isinstance(converted, np.ndarray) + for x, stamp in zip(converted, rng): + assert isinstance(x, datetime) + assert x == stamp.to_pydatetime() + assert x.tzinfo == stamp.tzinfo + + rng = date_range("20090415", "20090519") + rng_eastern = date_range("20090415", "20090519", tz=pytz.timezone("US/Eastern")) + rng_utc = date_range("20090415", "20090519", tz=pytz.utc) + + _check_rng(rng) + _check_rng(rng_eastern) + _check_rng(rng_utc) + + def test_index_convert_to_datetime_array_dateutil(self): + def _check_rng(rng): + converted = rng.to_pydatetime() + assert isinstance(converted, np.ndarray) + for x, stamp in zip(converted, rng): + assert isinstance(x, datetime) + assert x == stamp.to_pydatetime() + assert x.tzinfo == stamp.tzinfo + + rng = date_range("20090415", "20090519") + rng_eastern = date_range("20090415", "20090519", tz="dateutil/US/Eastern") + rng_utc = date_range("20090415", "20090519", tz=dateutil.tz.tzutc()) + + _check_rng(rng) + _check_rng(rng_eastern) + _check_rng(rng_utc) + + @pytest.mark.parametrize( + "tz, dtype", + [["US/Pacific", "datetime64[ns, US/Pacific]"], [None, "datetime64[ns]"]], + ) + def test_integer_index_astype_datetime(self, tz, dtype): + # GH 20997, 20964, 24559 + val = [Timestamp("2018-01-01", tz=tz).as_unit("ns")._value] + result = Index(val, name="idx").astype(dtype) + expected = DatetimeIndex(["2018-01-01"], tz=tz, name="idx").as_unit("ns") + tm.assert_index_equal(result, expected) + + def test_dti_astype_period(self): + idx = DatetimeIndex([NaT, "2011-01-01", "2011-02-01"], name="idx") + + res = idx.astype("period[M]") + exp = PeriodIndex(["NaT", "2011-01", "2011-02"], freq="M", name="idx") + tm.assert_index_equal(res, exp) + + res = idx.astype("period[3M]") + exp = PeriodIndex(["NaT", "2011-01", "2011-02"], freq="3M", name="idx") + tm.assert_index_equal(res, exp) + + +class TestAstype: + @pytest.mark.parametrize("tz", [None, "US/Central"]) + def test_astype_category(self, tz): + obj = date_range("2000", periods=2, tz=tz, name="idx") + result = obj.astype("category") + dti = DatetimeIndex(["2000-01-01", "2000-01-02"], tz=tz).as_unit("ns") + expected = pd.CategoricalIndex( + dti, + name="idx", + ) + tm.assert_index_equal(result, expected) + + result = obj._data.astype("category") + expected = expected.values + tm.assert_categorical_equal(result, expected) + + @pytest.mark.parametrize("tz", [None, "US/Central"]) + def test_astype_array_fallback(self, tz): + obj = date_range("2000", periods=2, tz=tz, name="idx") + result = obj.astype(bool) + expected = Index(np.array([True, True]), name="idx") + tm.assert_index_equal(result, expected) + + result = obj._data.astype(bool) + expected = np.array([True, True]) + tm.assert_numpy_array_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_delete.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_delete.py new file mode 100644 index 0000000000000000000000000000000000000000..2341499977f2247dc42c30470795378515f49dc8 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_delete.py @@ -0,0 +1,141 @@ +import pytest + +from pandas import ( + DatetimeIndex, + Series, + date_range, +) +import pandas._testing as tm + + +class TestDelete: + def test_delete(self, unit): + idx = date_range( + start="2000-01-01", periods=5, freq="ME", name="idx", unit=unit + ) + + # preserve freq + expected_0 = date_range( + start="2000-02-01", periods=4, freq="ME", name="idx", unit=unit + ) + expected_4 = date_range( + start="2000-01-01", periods=4, freq="ME", name="idx", unit=unit + ) + + # reset freq to None + expected_1 = DatetimeIndex( + ["2000-01-31", "2000-03-31", "2000-04-30", "2000-05-31"], + freq=None, + name="idx", + ).as_unit(unit) + + cases = { + 0: expected_0, + -5: expected_0, + -1: expected_4, + 4: expected_4, + 1: expected_1, + } + for n, expected in cases.items(): + result = idx.delete(n) + tm.assert_index_equal(result, expected) + assert result.name == expected.name + assert result.freq == expected.freq + + with pytest.raises((IndexError, ValueError), match="out of bounds"): + # either depending on numpy version + idx.delete(5) + + @pytest.mark.parametrize("tz", [None, "Asia/Tokyo", "US/Pacific"]) + def test_delete2(self, tz): + idx = date_range( + start="2000-01-01 09:00", periods=10, freq="h", name="idx", tz=tz + ) + + expected = date_range( + start="2000-01-01 10:00", periods=9, freq="h", name="idx", tz=tz + ) + result = idx.delete(0) + tm.assert_index_equal(result, expected) + assert result.name == expected.name + assert result.freqstr == "h" + assert result.tz == expected.tz + + expected = date_range( + start="2000-01-01 09:00", periods=9, freq="h", name="idx", tz=tz + ) + result = idx.delete(-1) + tm.assert_index_equal(result, expected) + assert result.name == expected.name + assert result.freqstr == "h" + assert result.tz == expected.tz + + def test_delete_slice(self, unit): + idx = date_range( + start="2000-01-01", periods=10, freq="D", name="idx", unit=unit + ) + + # preserve freq + expected_0_2 = date_range( + start="2000-01-04", periods=7, freq="D", name="idx", unit=unit + ) + expected_7_9 = date_range( + start="2000-01-01", periods=7, freq="D", name="idx", unit=unit + ) + + # reset freq to None + expected_3_5 = DatetimeIndex( + [ + "2000-01-01", + "2000-01-02", + "2000-01-03", + "2000-01-07", + "2000-01-08", + "2000-01-09", + "2000-01-10", + ], + freq=None, + name="idx", + ).as_unit(unit) + + cases = { + (0, 1, 2): expected_0_2, + (7, 8, 9): expected_7_9, + (3, 4, 5): expected_3_5, + } + for n, expected in cases.items(): + result = idx.delete(n) + tm.assert_index_equal(result, expected) + assert result.name == expected.name + assert result.freq == expected.freq + + result = idx.delete(slice(n[0], n[-1] + 1)) + tm.assert_index_equal(result, expected) + assert result.name == expected.name + assert result.freq == expected.freq + + # TODO: belongs in Series.drop tests? + @pytest.mark.parametrize("tz", [None, "Asia/Tokyo", "US/Pacific"]) + def test_delete_slice2(self, tz, unit): + dti = date_range( + "2000-01-01 09:00", periods=10, freq="h", name="idx", tz=tz, unit=unit + ) + ts = Series( + 1, + index=dti, + ) + # preserve freq + result = ts.drop(ts.index[:5]).index + expected = dti[5:] + tm.assert_index_equal(result, expected) + assert result.name == expected.name + assert result.freq == expected.freq + assert result.tz == expected.tz + + # reset freq to None + result = ts.drop(ts.index[[1, 3, 5, 7, 9]]).index + expected = dti[::2]._with_freq(None) + tm.assert_index_equal(result, expected) + assert result.name == expected.name + assert result.freq == expected.freq + assert result.tz == expected.tz diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_factorize.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_factorize.py new file mode 100644 index 0000000000000000000000000000000000000000..41ecf9ee6b82317137b1a6accee14ad8c1b5a35a --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_factorize.py @@ -0,0 +1,125 @@ +import numpy as np +import pytest + +from pandas import ( + DatetimeIndex, + Index, + date_range, + factorize, +) +import pandas._testing as tm + + +class TestDatetimeIndexFactorize: + def test_factorize(self): + idx1 = DatetimeIndex( + ["2014-01", "2014-01", "2014-02", "2014-02", "2014-03", "2014-03"] + ) + + exp_arr = np.array([0, 0, 1, 1, 2, 2], dtype=np.intp) + exp_idx = DatetimeIndex(["2014-01", "2014-02", "2014-03"]) + + arr, idx = idx1.factorize() + tm.assert_numpy_array_equal(arr, exp_arr) + tm.assert_index_equal(idx, exp_idx) + assert idx.freq == exp_idx.freq + + arr, idx = idx1.factorize(sort=True) + tm.assert_numpy_array_equal(arr, exp_arr) + tm.assert_index_equal(idx, exp_idx) + assert idx.freq == exp_idx.freq + + # tz must be preserved + idx1 = idx1.tz_localize("Asia/Tokyo") + exp_idx = exp_idx.tz_localize("Asia/Tokyo") + + arr, idx = idx1.factorize() + tm.assert_numpy_array_equal(arr, exp_arr) + tm.assert_index_equal(idx, exp_idx) + assert idx.freq == exp_idx.freq + + idx2 = DatetimeIndex( + ["2014-03", "2014-03", "2014-02", "2014-01", "2014-03", "2014-01"] + ) + + exp_arr = np.array([2, 2, 1, 0, 2, 0], dtype=np.intp) + exp_idx = DatetimeIndex(["2014-01", "2014-02", "2014-03"]) + arr, idx = idx2.factorize(sort=True) + tm.assert_numpy_array_equal(arr, exp_arr) + tm.assert_index_equal(idx, exp_idx) + assert idx.freq == exp_idx.freq + + exp_arr = np.array([0, 0, 1, 2, 0, 2], dtype=np.intp) + exp_idx = DatetimeIndex(["2014-03", "2014-02", "2014-01"]) + arr, idx = idx2.factorize() + tm.assert_numpy_array_equal(arr, exp_arr) + tm.assert_index_equal(idx, exp_idx) + assert idx.freq == exp_idx.freq + + def test_factorize_preserves_freq(self): + # GH#38120 freq should be preserved + idx3 = date_range("2000-01", periods=4, freq="ME", tz="Asia/Tokyo") + exp_arr = np.array([0, 1, 2, 3], dtype=np.intp) + + arr, idx = idx3.factorize() + tm.assert_numpy_array_equal(arr, exp_arr) + tm.assert_index_equal(idx, idx3) + assert idx.freq == idx3.freq + + arr, idx = factorize(idx3) + tm.assert_numpy_array_equal(arr, exp_arr) + tm.assert_index_equal(idx, idx3) + assert idx.freq == idx3.freq + + def test_factorize_tz(self, tz_naive_fixture, index_or_series): + tz = tz_naive_fixture + # GH#13750 + base = date_range("2016-11-05", freq="h", periods=100, tz=tz) + idx = base.repeat(5) + + exp_arr = np.arange(100, dtype=np.intp).repeat(5) + + obj = index_or_series(idx) + + arr, res = obj.factorize() + tm.assert_numpy_array_equal(arr, exp_arr) + expected = base._with_freq(None) + tm.assert_index_equal(res, expected) + assert res.freq == expected.freq + + def test_factorize_dst(self, index_or_series): + # GH#13750 + idx = date_range("2016-11-06", freq="h", periods=12, tz="US/Eastern") + obj = index_or_series(idx) + + arr, res = obj.factorize() + tm.assert_numpy_array_equal(arr, np.arange(12, dtype=np.intp)) + tm.assert_index_equal(res, idx) + if index_or_series is Index: + assert res.freq == idx.freq + + idx = date_range("2016-06-13", freq="h", periods=12, tz="US/Eastern") + obj = index_or_series(idx) + + arr, res = obj.factorize() + tm.assert_numpy_array_equal(arr, np.arange(12, dtype=np.intp)) + tm.assert_index_equal(res, idx) + if index_or_series is Index: + assert res.freq == idx.freq + + @pytest.mark.parametrize("sort", [True, False]) + def test_factorize_no_freq_non_nano(self, tz_naive_fixture, sort): + # GH#51978 case that does not go through the fastpath based on + # non-None freq + tz = tz_naive_fixture + idx = date_range("2016-11-06", freq="h", periods=5, tz=tz)[[0, 4, 1, 3, 2]] + exp_codes, exp_uniques = idx.factorize(sort=sort) + + res_codes, res_uniques = idx.as_unit("s").factorize(sort=sort) + + tm.assert_numpy_array_equal(res_codes, exp_codes) + tm.assert_index_equal(res_uniques, exp_uniques.as_unit("s")) + + res_codes, res_uniques = idx.as_unit("s").to_series().factorize(sort=sort) + tm.assert_numpy_array_equal(res_codes, exp_codes) + tm.assert_index_equal(res_uniques, exp_uniques.as_unit("s")) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_fillna.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_fillna.py new file mode 100644 index 0000000000000000000000000000000000000000..5fbe60bb0c50f0b6ec36eb02b125e9e9bf0f81dd --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_fillna.py @@ -0,0 +1,62 @@ +import pytest + +import pandas as pd +import pandas._testing as tm + + +class TestDatetimeIndexFillNA: + @pytest.mark.parametrize("tz", ["US/Eastern", "Asia/Tokyo"]) + def test_fillna_datetime64(self, tz): + # GH 11343 + idx = pd.DatetimeIndex(["2011-01-01 09:00", pd.NaT, "2011-01-01 11:00"]) + + exp = pd.DatetimeIndex( + ["2011-01-01 09:00", "2011-01-01 10:00", "2011-01-01 11:00"] + ) + tm.assert_index_equal(idx.fillna(pd.Timestamp("2011-01-01 10:00")), exp) + + # tz mismatch + exp = pd.Index( + [ + pd.Timestamp("2011-01-01 09:00"), + pd.Timestamp("2011-01-01 10:00", tz=tz), + pd.Timestamp("2011-01-01 11:00"), + ], + dtype=object, + ) + tm.assert_index_equal(idx.fillna(pd.Timestamp("2011-01-01 10:00", tz=tz)), exp) + + # object + exp = pd.Index( + [pd.Timestamp("2011-01-01 09:00"), "x", pd.Timestamp("2011-01-01 11:00")], + dtype=object, + ) + tm.assert_index_equal(idx.fillna("x"), exp) + + idx = pd.DatetimeIndex(["2011-01-01 09:00", pd.NaT, "2011-01-01 11:00"], tz=tz) + + exp = pd.DatetimeIndex( + ["2011-01-01 09:00", "2011-01-01 10:00", "2011-01-01 11:00"], tz=tz + ) + tm.assert_index_equal(idx.fillna(pd.Timestamp("2011-01-01 10:00", tz=tz)), exp) + + exp = pd.Index( + [ + pd.Timestamp("2011-01-01 09:00", tz=tz), + pd.Timestamp("2011-01-01 10:00"), + pd.Timestamp("2011-01-01 11:00", tz=tz), + ], + dtype=object, + ) + tm.assert_index_equal(idx.fillna(pd.Timestamp("2011-01-01 10:00")), exp) + + # object + exp = pd.Index( + [ + pd.Timestamp("2011-01-01 09:00", tz=tz), + "x", + pd.Timestamp("2011-01-01 11:00", tz=tz), + ], + dtype=object, + ) + tm.assert_index_equal(idx.fillna("x"), exp) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_insert.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_insert.py new file mode 100644 index 0000000000000000000000000000000000000000..ebfe490e0e067807f7a38d3f8f285aee76718fcf --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_insert.py @@ -0,0 +1,265 @@ +from datetime import datetime + +import numpy as np +import pytest +import pytz + +from pandas import ( + NA, + DatetimeIndex, + Index, + NaT, + Timestamp, + date_range, +) +import pandas._testing as tm + + +class TestInsert: + @pytest.mark.parametrize("null", [None, np.nan, np.datetime64("NaT"), NaT, NA]) + @pytest.mark.parametrize("tz", [None, "UTC", "US/Eastern"]) + def test_insert_nat(self, tz, null): + # GH#16537, GH#18295 (test missing) + + idx = DatetimeIndex(["2017-01-01"], tz=tz) + expected = DatetimeIndex(["NaT", "2017-01-01"], tz=tz) + if tz is not None and isinstance(null, np.datetime64): + expected = Index([null, idx[0]], dtype=object) + + res = idx.insert(0, null) + tm.assert_index_equal(res, expected) + + @pytest.mark.parametrize("tz", [None, "UTC", "US/Eastern"]) + def test_insert_invalid_na(self, tz): + idx = DatetimeIndex(["2017-01-01"], tz=tz) + + item = np.timedelta64("NaT") + result = idx.insert(0, item) + expected = Index([item] + list(idx), dtype=object) + tm.assert_index_equal(result, expected) + + def test_insert_empty_preserves_freq(self, tz_naive_fixture): + # GH#33573 + tz = tz_naive_fixture + dti = DatetimeIndex([], tz=tz, freq="D") + item = Timestamp("2017-04-05").tz_localize(tz) + + result = dti.insert(0, item) + assert result.freq == dti.freq + + # But not when we insert an item that doesn't conform to freq + dti = DatetimeIndex([], tz=tz, freq="W-THU") + result = dti.insert(0, item) + assert result.freq is None + + def test_insert(self, unit): + idx = DatetimeIndex( + ["2000-01-04", "2000-01-01", "2000-01-02"], name="idx" + ).as_unit(unit) + + result = idx.insert(2, datetime(2000, 1, 5)) + exp = DatetimeIndex( + ["2000-01-04", "2000-01-01", "2000-01-05", "2000-01-02"], name="idx" + ).as_unit(unit) + tm.assert_index_equal(result, exp) + + # insertion of non-datetime should coerce to object index + result = idx.insert(1, "inserted") + expected = Index( + [ + datetime(2000, 1, 4), + "inserted", + datetime(2000, 1, 1), + datetime(2000, 1, 2), + ], + name="idx", + ) + assert not isinstance(result, DatetimeIndex) + tm.assert_index_equal(result, expected) + assert result.name == expected.name + + def test_insert2(self, unit): + idx = date_range("1/1/2000", periods=3, freq="ME", name="idx", unit=unit) + + # preserve freq + expected_0 = DatetimeIndex( + ["1999-12-31", "2000-01-31", "2000-02-29", "2000-03-31"], + name="idx", + freq="ME", + ).as_unit(unit) + expected_3 = DatetimeIndex( + ["2000-01-31", "2000-02-29", "2000-03-31", "2000-04-30"], + name="idx", + freq="ME", + ).as_unit(unit) + + # reset freq to None + expected_1_nofreq = DatetimeIndex( + ["2000-01-31", "2000-01-31", "2000-02-29", "2000-03-31"], + name="idx", + freq=None, + ).as_unit(unit) + expected_3_nofreq = DatetimeIndex( + ["2000-01-31", "2000-02-29", "2000-03-31", "2000-01-02"], + name="idx", + freq=None, + ).as_unit(unit) + + cases = [ + (0, datetime(1999, 12, 31), expected_0), + (-3, datetime(1999, 12, 31), expected_0), + (3, datetime(2000, 4, 30), expected_3), + (1, datetime(2000, 1, 31), expected_1_nofreq), + (3, datetime(2000, 1, 2), expected_3_nofreq), + ] + + for n, d, expected in cases: + result = idx.insert(n, d) + tm.assert_index_equal(result, expected) + assert result.name == expected.name + assert result.freq == expected.freq + + def test_insert3(self, unit): + idx = date_range("1/1/2000", periods=3, freq="ME", name="idx", unit=unit) + + # reset freq to None + result = idx.insert(3, datetime(2000, 1, 2)) + expected = DatetimeIndex( + ["2000-01-31", "2000-02-29", "2000-03-31", "2000-01-02"], + name="idx", + freq=None, + ).as_unit(unit) + tm.assert_index_equal(result, expected) + assert result.name == expected.name + assert result.freq is None + + def test_insert4(self, unit): + for tz in ["US/Pacific", "Asia/Singapore"]: + idx = date_range( + "1/1/2000 09:00", periods=6, freq="h", tz=tz, name="idx", unit=unit + ) + # preserve freq + expected = date_range( + "1/1/2000 09:00", periods=7, freq="h", tz=tz, name="idx", unit=unit + ) + for d in [ + Timestamp("2000-01-01 15:00", tz=tz), + pytz.timezone(tz).localize(datetime(2000, 1, 1, 15)), + ]: + result = idx.insert(6, d) + tm.assert_index_equal(result, expected) + assert result.name == expected.name + assert result.freq == expected.freq + assert result.tz == expected.tz + + expected = DatetimeIndex( + [ + "2000-01-01 09:00", + "2000-01-01 10:00", + "2000-01-01 11:00", + "2000-01-01 12:00", + "2000-01-01 13:00", + "2000-01-01 14:00", + "2000-01-01 10:00", + ], + name="idx", + tz=tz, + freq=None, + ).as_unit(unit) + # reset freq to None + for d in [ + Timestamp("2000-01-01 10:00", tz=tz), + pytz.timezone(tz).localize(datetime(2000, 1, 1, 10)), + ]: + result = idx.insert(6, d) + tm.assert_index_equal(result, expected) + assert result.name == expected.name + assert result.tz == expected.tz + assert result.freq is None + + # TODO: also changes DataFrame.__setitem__ with expansion + def test_insert_mismatched_tzawareness(self): + # see GH#7299 + idx = date_range("1/1/2000", periods=3, freq="D", tz="Asia/Tokyo", name="idx") + + # mismatched tz-awareness + item = Timestamp("2000-01-04") + result = idx.insert(3, item) + expected = Index( + list(idx[:3]) + [item] + list(idx[3:]), dtype=object, name="idx" + ) + tm.assert_index_equal(result, expected) + + # mismatched tz-awareness + item = datetime(2000, 1, 4) + result = idx.insert(3, item) + expected = Index( + list(idx[:3]) + [item] + list(idx[3:]), dtype=object, name="idx" + ) + tm.assert_index_equal(result, expected) + + # TODO: also changes DataFrame.__setitem__ with expansion + def test_insert_mismatched_tz(self): + # see GH#7299 + # pre-2.0 with mismatched tzs we would cast to object + idx = date_range("1/1/2000", periods=3, freq="D", tz="Asia/Tokyo", name="idx") + + # mismatched tz -> cast to object (could reasonably cast to same tz or UTC) + item = Timestamp("2000-01-04", tz="US/Eastern") + result = idx.insert(3, item) + expected = Index( + list(idx[:3]) + [item.tz_convert(idx.tz)] + list(idx[3:]), + name="idx", + ) + assert expected.dtype == idx.dtype + tm.assert_index_equal(result, expected) + + item = datetime(2000, 1, 4, tzinfo=pytz.timezone("US/Eastern")) + result = idx.insert(3, item) + expected = Index( + list(idx[:3]) + [item.astimezone(idx.tzinfo)] + list(idx[3:]), + name="idx", + ) + assert expected.dtype == idx.dtype + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "item", [0, np.int64(0), np.float64(0), np.array(0), np.timedelta64(456)] + ) + def test_insert_mismatched_types_raises(self, tz_aware_fixture, item): + # GH#33703 dont cast these to dt64 + tz = tz_aware_fixture + dti = date_range("2019-11-04", periods=9, freq="-1D", name=9, tz=tz) + + result = dti.insert(1, item) + + if isinstance(item, np.ndarray): + assert item.item() == 0 + expected = Index([dti[0], 0] + list(dti[1:]), dtype=object, name=9) + else: + expected = Index([dti[0], item] + list(dti[1:]), dtype=object, name=9) + + tm.assert_index_equal(result, expected) + + def test_insert_castable_str(self, tz_aware_fixture): + # GH#33703 + tz = tz_aware_fixture + dti = date_range("2019-11-04", periods=3, freq="-1D", name=9, tz=tz) + + value = "2019-11-05" + result = dti.insert(0, value) + + ts = Timestamp(value).tz_localize(tz) + expected = DatetimeIndex([ts] + list(dti), dtype=dti.dtype, name=9) + tm.assert_index_equal(result, expected) + + def test_insert_non_castable_str(self, tz_aware_fixture): + # GH#33703 + tz = tz_aware_fixture + dti = date_range("2019-11-04", periods=3, freq="-1D", name=9, tz=tz) + + value = "foo" + result = dti.insert(0, value) + + expected = Index(["foo"] + list(dti), dtype=object, name=9) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_isocalendar.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_isocalendar.py new file mode 100644 index 0000000000000000000000000000000000000000..97f1003e0f43f7564434cbc8b3051e870143209c --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_isocalendar.py @@ -0,0 +1,28 @@ +from pandas import ( + DataFrame, + DatetimeIndex, + date_range, +) +import pandas._testing as tm + + +def test_isocalendar_returns_correct_values_close_to_new_year_with_tz(): + # GH#6538: Check that DatetimeIndex and its TimeStamp elements + # return the same weekofyear accessor close to new year w/ tz + dates = ["2013/12/29", "2013/12/30", "2013/12/31"] + dates = DatetimeIndex(dates, tz="Europe/Brussels") + result = dates.isocalendar() + expected_data_frame = DataFrame( + [[2013, 52, 7], [2014, 1, 1], [2014, 1, 2]], + columns=["year", "week", "day"], + index=dates, + dtype="UInt32", + ) + tm.assert_frame_equal(result, expected_data_frame) + + +def test_dti_timestamp_isocalendar_fields(): + idx = date_range("2020-01-01", periods=10) + expected = tuple(idx.isocalendar().iloc[-1].to_list()) + result = idx[-1].isocalendar() + assert result == expected diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_map.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_map.py new file mode 100644 index 0000000000000000000000000000000000000000..f35f07bd32068f15fa8c4eb8d1ad8c2a6d43fc72 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_map.py @@ -0,0 +1,47 @@ +import pytest + +from pandas import ( + DatetimeIndex, + Index, + MultiIndex, + Period, + date_range, +) +import pandas._testing as tm + + +class TestMap: + def test_map(self): + rng = date_range("1/1/2000", periods=10) + + f = lambda x: x.strftime("%Y%m%d") + result = rng.map(f) + exp = Index([f(x) for x in rng]) + tm.assert_index_equal(result, exp) + + def test_map_fallthrough(self, capsys): + # GH#22067, check we don't get warnings about silently ignored errors + dti = date_range("2017-01-01", "2018-01-01", freq="B") + + dti.map(lambda x: Period(year=x.year, month=x.month, freq="M")) + + captured = capsys.readouterr() + assert captured.err == "" + + def test_map_bug_1677(self): + index = DatetimeIndex(["2012-04-25 09:30:00.393000"]) + f = index.asof + + result = index.map(f) + expected = Index([f(index[0])]) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("name", [None, "name"]) + def test_index_map(self, name): + # see GH#20990 + count = 6 + index = date_range("2018-01-01", periods=count, freq="ME", name=name).map( + lambda x: (x.year, x.month) + ) + exp_index = MultiIndex.from_product(((2018,), range(1, 7)), names=[name, name]) + tm.assert_index_equal(index, exp_index) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_normalize.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_normalize.py new file mode 100644 index 0000000000000000000000000000000000000000..74711f67e64465c5592e562fcc94202666d0ad67 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_normalize.py @@ -0,0 +1,95 @@ +from dateutil.tz import tzlocal +import numpy as np +import pytest + +import pandas.util._test_decorators as td + +from pandas import ( + DatetimeIndex, + NaT, + Timestamp, + date_range, +) +import pandas._testing as tm + + +class TestNormalize: + def test_normalize(self): + rng = date_range("1/1/2000 9:30", periods=10, freq="D") + + result = rng.normalize() + expected = date_range("1/1/2000", periods=10, freq="D") + tm.assert_index_equal(result, expected) + + arr_ns = np.array([1380585623454345752, 1380585612343234312]).astype( + "datetime64[ns]" + ) + rng_ns = DatetimeIndex(arr_ns) + rng_ns_normalized = rng_ns.normalize() + + arr_ns = np.array([1380585600000000000, 1380585600000000000]).astype( + "datetime64[ns]" + ) + expected = DatetimeIndex(arr_ns) + tm.assert_index_equal(rng_ns_normalized, expected) + + assert result.is_normalized + assert not rng.is_normalized + + def test_normalize_nat(self): + dti = DatetimeIndex([NaT, Timestamp("2018-01-01 01:00:00")]) + result = dti.normalize() + expected = DatetimeIndex([NaT, Timestamp("2018-01-01")]) + tm.assert_index_equal(result, expected) + + def test_normalize_tz(self): + rng = date_range("1/1/2000 9:30", periods=10, freq="D", tz="US/Eastern") + + result = rng.normalize() # does not preserve freq + expected = date_range("1/1/2000", periods=10, freq="D", tz="US/Eastern") + tm.assert_index_equal(result, expected._with_freq(None)) + + assert result.is_normalized + assert not rng.is_normalized + + rng = date_range("1/1/2000 9:30", periods=10, freq="D", tz="UTC") + + result = rng.normalize() + expected = date_range("1/1/2000", periods=10, freq="D", tz="UTC") + tm.assert_index_equal(result, expected) + + assert result.is_normalized + assert not rng.is_normalized + + rng = date_range("1/1/2000 9:30", periods=10, freq="D", tz=tzlocal()) + result = rng.normalize() # does not preserve freq + expected = date_range("1/1/2000", periods=10, freq="D", tz=tzlocal()) + tm.assert_index_equal(result, expected._with_freq(None)) + + assert result.is_normalized + assert not rng.is_normalized + + @td.skip_if_windows + @pytest.mark.parametrize( + "timezone", + [ + "US/Pacific", + "US/Eastern", + "UTC", + "Asia/Kolkata", + "Asia/Shanghai", + "Australia/Canberra", + ], + ) + def test_normalize_tz_local(self, timezone): + # GH#13459 + with tm.set_timezone(timezone): + rng = date_range("1/1/2000 9:30", periods=10, freq="D", tz=tzlocal()) + + result = rng.normalize() + expected = date_range("1/1/2000", periods=10, freq="D", tz=tzlocal()) + expected = expected._with_freq(None) + tm.assert_index_equal(result, expected) + + assert result.is_normalized + assert not rng.is_normalized diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_repeat.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_repeat.py new file mode 100644 index 0000000000000000000000000000000000000000..92501755f8c5b3e943864c76a62cd712edc6dd51 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_repeat.py @@ -0,0 +1,83 @@ +import numpy as np +import pytest + +from pandas import ( + DatetimeIndex, + Timestamp, + date_range, +) +import pandas._testing as tm + + +class TestRepeat: + def test_repeat_range(self, tz_naive_fixture): + rng = date_range("1/1/2000", "1/1/2001") + + result = rng.repeat(5) + assert result.freq is None + assert len(result) == 5 * len(rng) + + def test_repeat_range2(self, tz_naive_fixture, unit): + tz = tz_naive_fixture + index = date_range("2001-01-01", periods=2, freq="D", tz=tz, unit=unit) + exp = DatetimeIndex( + ["2001-01-01", "2001-01-01", "2001-01-02", "2001-01-02"], tz=tz + ).as_unit(unit) + for res in [index.repeat(2), np.repeat(index, 2)]: + tm.assert_index_equal(res, exp) + assert res.freq is None + + def test_repeat_range3(self, tz_naive_fixture, unit): + tz = tz_naive_fixture + index = date_range("2001-01-01", periods=2, freq="2D", tz=tz, unit=unit) + exp = DatetimeIndex( + ["2001-01-01", "2001-01-01", "2001-01-03", "2001-01-03"], tz=tz + ).as_unit(unit) + for res in [index.repeat(2), np.repeat(index, 2)]: + tm.assert_index_equal(res, exp) + assert res.freq is None + + def test_repeat_range4(self, tz_naive_fixture, unit): + tz = tz_naive_fixture + index = DatetimeIndex(["2001-01-01", "NaT", "2003-01-01"], tz=tz).as_unit(unit) + exp = DatetimeIndex( + [ + "2001-01-01", + "2001-01-01", + "2001-01-01", + "NaT", + "NaT", + "NaT", + "2003-01-01", + "2003-01-01", + "2003-01-01", + ], + tz=tz, + ).as_unit(unit) + for res in [index.repeat(3), np.repeat(index, 3)]: + tm.assert_index_equal(res, exp) + assert res.freq is None + + def test_repeat(self, tz_naive_fixture, unit): + tz = tz_naive_fixture + reps = 2 + msg = "the 'axis' parameter is not supported" + + rng = date_range(start="2016-01-01", periods=2, freq="30Min", tz=tz, unit=unit) + + expected_rng = DatetimeIndex( + [ + Timestamp("2016-01-01 00:00:00", tz=tz), + Timestamp("2016-01-01 00:00:00", tz=tz), + Timestamp("2016-01-01 00:30:00", tz=tz), + Timestamp("2016-01-01 00:30:00", tz=tz), + ] + ).as_unit(unit) + + res = rng.repeat(reps) + tm.assert_index_equal(res, expected_rng) + assert res.freq is None + + tm.assert_index_equal(np.repeat(rng, reps), expected_rng) + with pytest.raises(ValueError, match=msg): + np.repeat(rng, reps, axis=1) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_resolution.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_resolution.py new file mode 100644 index 0000000000000000000000000000000000000000..8399fafbbaff20463901a8008555492bc8b5c5f5 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_resolution.py @@ -0,0 +1,31 @@ +from dateutil.tz import tzlocal +import pytest + +from pandas.compat import IS64 + +from pandas import date_range + + +@pytest.mark.parametrize( + "freq,expected", + [ + ("YE", "day"), + ("QE", "day"), + ("ME", "day"), + ("D", "day"), + ("h", "hour"), + ("min", "minute"), + ("s", "second"), + ("ms", "millisecond"), + ("us", "microsecond"), + ], +) +def test_dti_resolution(request, tz_naive_fixture, freq, expected): + tz = tz_naive_fixture + if freq == "YE" and not IS64 and isinstance(tz, tzlocal): + request.applymarker( + pytest.mark.xfail(reason="OverflowError inside tzlocal past 2038") + ) + + idx = date_range(start="2013-04-01", periods=30, freq=freq, tz=tz) + assert idx.resolution == expected diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_round.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_round.py new file mode 100644 index 0000000000000000000000000000000000000000..cde4a3a65804df514dfa71ce3e724aaee7d413c0 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_round.py @@ -0,0 +1,221 @@ +import pytest + +from pandas._libs.tslibs import to_offset +from pandas._libs.tslibs.offsets import INVALID_FREQ_ERR_MSG + +from pandas import ( + DatetimeIndex, + Timestamp, + date_range, +) +import pandas._testing as tm + + +class TestDatetimeIndexRound: + def test_round_daily(self): + dti = date_range("20130101 09:10:11", periods=5) + result = dti.round("D") + expected = date_range("20130101", periods=5) + tm.assert_index_equal(result, expected) + + dti = dti.tz_localize("UTC").tz_convert("US/Eastern") + result = dti.round("D") + expected = date_range("20130101", periods=5).tz_localize("US/Eastern") + tm.assert_index_equal(result, expected) + + result = dti.round("s") + tm.assert_index_equal(result, dti) + + @pytest.mark.parametrize( + "freq, error_msg", + [ + ("YE", " is a non-fixed frequency"), + ("ME", " is a non-fixed frequency"), + ("foobar", "Invalid frequency: foobar"), + ], + ) + def test_round_invalid(self, freq, error_msg): + dti = date_range("20130101 09:10:11", periods=5) + dti = dti.tz_localize("UTC").tz_convert("US/Eastern") + with pytest.raises(ValueError, match=error_msg): + dti.round(freq) + + def test_round(self, tz_naive_fixture, unit): + tz = tz_naive_fixture + rng = date_range(start="2016-01-01", periods=5, freq="30Min", tz=tz, unit=unit) + elt = rng[1] + + expected_rng = DatetimeIndex( + [ + Timestamp("2016-01-01 00:00:00", tz=tz), + Timestamp("2016-01-01 00:00:00", tz=tz), + Timestamp("2016-01-01 01:00:00", tz=tz), + Timestamp("2016-01-01 02:00:00", tz=tz), + Timestamp("2016-01-01 02:00:00", tz=tz), + ] + ).as_unit(unit) + expected_elt = expected_rng[1] + + result = rng.round(freq="h") + tm.assert_index_equal(result, expected_rng) + assert elt.round(freq="h") == expected_elt + + msg = INVALID_FREQ_ERR_MSG + with pytest.raises(ValueError, match=msg): + rng.round(freq="foo") + with pytest.raises(ValueError, match=msg): + elt.round(freq="foo") + + msg = " is a non-fixed frequency" + with pytest.raises(ValueError, match=msg): + rng.round(freq="ME") + with pytest.raises(ValueError, match=msg): + elt.round(freq="ME") + + def test_round2(self, tz_naive_fixture): + tz = tz_naive_fixture + # GH#14440 & GH#15578 + index = DatetimeIndex(["2016-10-17 12:00:00.0015"], tz=tz).as_unit("ns") + result = index.round("ms") + expected = DatetimeIndex(["2016-10-17 12:00:00.002000"], tz=tz).as_unit("ns") + tm.assert_index_equal(result, expected) + + for freq in ["us", "ns"]: + tm.assert_index_equal(index, index.round(freq)) + + def test_round3(self, tz_naive_fixture): + tz = tz_naive_fixture + index = DatetimeIndex(["2016-10-17 12:00:00.00149"], tz=tz).as_unit("ns") + result = index.round("ms") + expected = DatetimeIndex(["2016-10-17 12:00:00.001000"], tz=tz).as_unit("ns") + tm.assert_index_equal(result, expected) + + def test_round4(self, tz_naive_fixture): + index = DatetimeIndex(["2016-10-17 12:00:00.001501031"], dtype="M8[ns]") + result = index.round("10ns") + expected = DatetimeIndex(["2016-10-17 12:00:00.001501030"], dtype="M8[ns]") + tm.assert_index_equal(result, expected) + + ts = "2016-10-17 12:00:00.001501031" + dti = DatetimeIndex([ts], dtype="M8[ns]") + with tm.assert_produces_warning(False): + dti.round("1010ns") + + def test_no_rounding_occurs(self, tz_naive_fixture): + # GH 21262 + tz = tz_naive_fixture + rng = date_range(start="2016-01-01", periods=5, freq="2Min", tz=tz) + + expected_rng = DatetimeIndex( + [ + Timestamp("2016-01-01 00:00:00", tz=tz), + Timestamp("2016-01-01 00:02:00", tz=tz), + Timestamp("2016-01-01 00:04:00", tz=tz), + Timestamp("2016-01-01 00:06:00", tz=tz), + Timestamp("2016-01-01 00:08:00", tz=tz), + ] + ).as_unit("ns") + + result = rng.round(freq="2min") + tm.assert_index_equal(result, expected_rng) + + @pytest.mark.parametrize( + "test_input, rounder, freq, expected", + [ + (["2117-01-01 00:00:45"], "floor", "15s", ["2117-01-01 00:00:45"]), + (["2117-01-01 00:00:45"], "ceil", "15s", ["2117-01-01 00:00:45"]), + ( + ["2117-01-01 00:00:45.000000012"], + "floor", + "10ns", + ["2117-01-01 00:00:45.000000010"], + ), + ( + ["1823-01-01 00:00:01.000000012"], + "ceil", + "10ns", + ["1823-01-01 00:00:01.000000020"], + ), + (["1823-01-01 00:00:01"], "floor", "1s", ["1823-01-01 00:00:01"]), + (["1823-01-01 00:00:01"], "ceil", "1s", ["1823-01-01 00:00:01"]), + (["2018-01-01 00:15:00"], "ceil", "15min", ["2018-01-01 00:15:00"]), + (["2018-01-01 00:15:00"], "floor", "15min", ["2018-01-01 00:15:00"]), + (["1823-01-01 03:00:00"], "ceil", "3h", ["1823-01-01 03:00:00"]), + (["1823-01-01 03:00:00"], "floor", "3h", ["1823-01-01 03:00:00"]), + ( + ("NaT", "1823-01-01 00:00:01"), + "floor", + "1s", + ("NaT", "1823-01-01 00:00:01"), + ), + ( + ("NaT", "1823-01-01 00:00:01"), + "ceil", + "1s", + ("NaT", "1823-01-01 00:00:01"), + ), + ], + ) + def test_ceil_floor_edge(self, test_input, rounder, freq, expected): + dt = DatetimeIndex(list(test_input)) + func = getattr(dt, rounder) + result = func(freq) + expected = DatetimeIndex(list(expected)) + assert expected.equals(result) + + @pytest.mark.parametrize( + "start, index_freq, periods", + [("2018-01-01", "12h", 25), ("2018-01-01 0:0:0.124999", "1ns", 1000)], + ) + @pytest.mark.parametrize( + "round_freq", + [ + "2ns", + "3ns", + "4ns", + "5ns", + "6ns", + "7ns", + "250ns", + "500ns", + "750ns", + "1us", + "19us", + "250us", + "500us", + "750us", + "1s", + "2s", + "3s", + "12h", + "1D", + ], + ) + def test_round_int64(self, start, index_freq, periods, round_freq): + dt = date_range(start=start, freq=index_freq, periods=periods) + unit = to_offset(round_freq).nanos + + # test floor + result = dt.floor(round_freq) + diff = dt.asi8 - result.asi8 + mod = result.asi8 % unit + assert (mod == 0).all(), f"floor not a {round_freq} multiple" + assert (0 <= diff).all() and (diff < unit).all(), "floor error" + + # test ceil + result = dt.ceil(round_freq) + diff = result.asi8 - dt.asi8 + mod = result.asi8 % unit + assert (mod == 0).all(), f"ceil not a {round_freq} multiple" + assert (0 <= diff).all() and (diff < unit).all(), "ceil error" + + # test round + result = dt.round(round_freq) + diff = abs(result.asi8 - dt.asi8) + mod = result.asi8 % unit + assert (mod == 0).all(), f"round not a {round_freq} multiple" + assert (diff <= unit // 2).all(), "round error" + if unit % 2 == 0: + assert ( + result.asi8[diff == unit // 2] % 2 == 0 + ).all(), "round half to even error" diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_shift.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_shift.py new file mode 100644 index 0000000000000000000000000000000000000000..d8bdcc2a176851d92d8bf79bddb2669419e07b76 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_shift.py @@ -0,0 +1,169 @@ +from datetime import datetime + +import pytest +import pytz + +from pandas.errors import NullFrequencyError + +import pandas as pd +from pandas import ( + DatetimeIndex, + Series, + date_range, +) +import pandas._testing as tm + +START, END = datetime(2009, 1, 1), datetime(2010, 1, 1) + + +class TestDatetimeIndexShift: + # ------------------------------------------------------------- + # DatetimeIndex.shift is used in integer addition + + def test_dti_shift_tzaware(self, tz_naive_fixture, unit): + # GH#9903 + tz = tz_naive_fixture + idx = DatetimeIndex([], name="xxx", tz=tz).as_unit(unit) + tm.assert_index_equal(idx.shift(0, freq="h"), idx) + tm.assert_index_equal(idx.shift(3, freq="h"), idx) + + idx = DatetimeIndex( + ["2011-01-01 10:00", "2011-01-01 11:00", "2011-01-01 12:00"], + name="xxx", + tz=tz, + freq="h", + ).as_unit(unit) + tm.assert_index_equal(idx.shift(0, freq="h"), idx) + exp = DatetimeIndex( + ["2011-01-01 13:00", "2011-01-01 14:00", "2011-01-01 15:00"], + name="xxx", + tz=tz, + freq="h", + ).as_unit(unit) + tm.assert_index_equal(idx.shift(3, freq="h"), exp) + exp = DatetimeIndex( + ["2011-01-01 07:00", "2011-01-01 08:00", "2011-01-01 09:00"], + name="xxx", + tz=tz, + freq="h", + ).as_unit(unit) + tm.assert_index_equal(idx.shift(-3, freq="h"), exp) + + def test_dti_shift_freqs(self, unit): + # test shift for DatetimeIndex and non DatetimeIndex + # GH#8083 + drange = date_range("20130101", periods=5, unit=unit) + result = drange.shift(1) + expected = DatetimeIndex( + ["2013-01-02", "2013-01-03", "2013-01-04", "2013-01-05", "2013-01-06"], + dtype=f"M8[{unit}]", + freq="D", + ) + tm.assert_index_equal(result, expected) + + result = drange.shift(-1) + expected = DatetimeIndex( + ["2012-12-31", "2013-01-01", "2013-01-02", "2013-01-03", "2013-01-04"], + dtype=f"M8[{unit}]", + freq="D", + ) + tm.assert_index_equal(result, expected) + + result = drange.shift(3, freq="2D") + expected = DatetimeIndex( + ["2013-01-07", "2013-01-08", "2013-01-09", "2013-01-10", "2013-01-11"], + dtype=f"M8[{unit}]", + freq="D", + ) + tm.assert_index_equal(result, expected) + + def test_dti_shift_int(self, unit): + rng = date_range("1/1/2000", periods=20, unit=unit) + + result = rng + 5 * rng.freq + expected = rng.shift(5) + tm.assert_index_equal(result, expected) + + result = rng - 5 * rng.freq + expected = rng.shift(-5) + tm.assert_index_equal(result, expected) + + def test_dti_shift_no_freq(self, unit): + # GH#19147 + dti = DatetimeIndex(["2011-01-01 10:00", "2011-01-01"], freq=None).as_unit(unit) + with pytest.raises(NullFrequencyError, match="Cannot shift with no freq"): + dti.shift(2) + + @pytest.mark.parametrize("tzstr", ["US/Eastern", "dateutil/US/Eastern"]) + def test_dti_shift_localized(self, tzstr, unit): + dr = date_range("2011/1/1", "2012/1/1", freq="W-FRI", unit=unit) + dr_tz = dr.tz_localize(tzstr) + + result = dr_tz.shift(1, "10min") + assert result.tz == dr_tz.tz + + def test_dti_shift_across_dst(self, unit): + # GH 8616 + idx = date_range( + "2013-11-03", tz="America/Chicago", periods=7, freq="h", unit=unit + ) + ser = Series(index=idx[:-1], dtype=object) + result = ser.shift(freq="h") + expected = Series(index=idx[1:], dtype=object) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize( + "shift, result_time", + [ + [0, "2014-11-14 00:00:00"], + [-1, "2014-11-13 23:00:00"], + [1, "2014-11-14 01:00:00"], + ], + ) + def test_dti_shift_near_midnight(self, shift, result_time, unit): + # GH 8616 + dt = datetime(2014, 11, 14, 0) + dt_est = pytz.timezone("EST").localize(dt) + idx = DatetimeIndex([dt_est]).as_unit(unit) + ser = Series(data=[1], index=idx) + result = ser.shift(shift, freq="h") + exp_index = DatetimeIndex([result_time], tz="EST").as_unit(unit) + expected = Series(1, index=exp_index) + tm.assert_series_equal(result, expected) + + def test_shift_periods(self, unit): + # GH#22458 : argument 'n' was deprecated in favor of 'periods' + idx = date_range(start=START, end=END, periods=3, unit=unit) + tm.assert_index_equal(idx.shift(periods=0), idx) + tm.assert_index_equal(idx.shift(0), idx) + + @pytest.mark.parametrize("freq", ["B", "C"]) + def test_shift_bday(self, freq, unit): + rng = date_range(START, END, freq=freq, unit=unit) + shifted = rng.shift(5) + assert shifted[0] == rng[5] + assert shifted.freq == rng.freq + + shifted = rng.shift(-5) + assert shifted[5] == rng[0] + assert shifted.freq == rng.freq + + shifted = rng.shift(0) + assert shifted[0] == rng[0] + assert shifted.freq == rng.freq + + def test_shift_bmonth(self, unit): + rng = date_range(START, END, freq=pd.offsets.BMonthEnd(), unit=unit) + shifted = rng.shift(1, freq=pd.offsets.BDay()) + assert shifted[0] == rng[0] + pd.offsets.BDay() + + rng = date_range(START, END, freq=pd.offsets.BMonthEnd(), unit=unit) + with tm.assert_produces_warning(pd.errors.PerformanceWarning): + shifted = rng.shift(1, freq=pd.offsets.CDay()) + assert shifted[0] == rng[0] + pd.offsets.CDay() + + def test_shift_empty(self, unit): + # GH#14811 + dti = date_range(start="2016-10-21", end="2016-10-21", freq="BME", unit=unit) + result = dti.shift(1) + tm.assert_index_equal(result, dti) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_snap.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_snap.py new file mode 100644 index 0000000000000000000000000000000000000000..7064e9e7993f8cd14420bb3101c084923c13c4e7 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_snap.py @@ -0,0 +1,47 @@ +import pytest + +from pandas import ( + DatetimeIndex, + date_range, +) +import pandas._testing as tm + + +@pytest.mark.parametrize("tz", [None, "Asia/Shanghai", "Europe/Berlin"]) +@pytest.mark.parametrize("name", [None, "my_dti"]) +@pytest.mark.parametrize("unit", ["ns", "us", "ms", "s"]) +def test_dti_snap(name, tz, unit): + dti = DatetimeIndex( + [ + "1/1/2002", + "1/2/2002", + "1/3/2002", + "1/4/2002", + "1/5/2002", + "1/6/2002", + "1/7/2002", + ], + name=name, + tz=tz, + freq="D", + ) + dti = dti.as_unit(unit) + + result = dti.snap(freq="W-MON") + expected = date_range("12/31/2001", "1/7/2002", name=name, tz=tz, freq="w-mon") + expected = expected.repeat([3, 4]) + expected = expected.as_unit(unit) + tm.assert_index_equal(result, expected) + assert result.tz == expected.tz + assert result.freq is None + assert expected.freq is None + + result = dti.snap(freq="B") + + expected = date_range("1/1/2002", "1/7/2002", name=name, tz=tz, freq="b") + expected = expected.repeat([1, 1, 1, 2, 2]) + expected = expected.as_unit(unit) + tm.assert_index_equal(result, expected) + assert result.tz == expected.tz + assert result.freq is None + assert expected.freq is None diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_to_frame.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_to_frame.py new file mode 100644 index 0000000000000000000000000000000000000000..c829109d4e06c14dca160f1de8903432f844f4ef --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_to_frame.py @@ -0,0 +1,28 @@ +from pandas import ( + DataFrame, + Index, + date_range, +) +import pandas._testing as tm + + +class TestToFrame: + def test_to_frame_datetime_tz(self): + # GH#25809 + idx = date_range(start="2019-01-01", end="2019-01-30", freq="D", tz="UTC") + result = idx.to_frame() + expected = DataFrame(idx, index=idx) + tm.assert_frame_equal(result, expected) + + def test_to_frame_respects_none_name(self): + # GH#44212 if we explicitly pass name=None, then that should be respected, + # not changed to 0 + # GH-45448 this is first deprecated to only change in the future + idx = date_range(start="2019-01-01", end="2019-01-30", freq="D", tz="UTC") + result = idx.to_frame(name=None) + exp_idx = Index([None], dtype=object) + tm.assert_index_equal(exp_idx, result.columns) + + result = idx.rename("foo").to_frame(name=None) + exp_idx = Index([None], dtype=object) + tm.assert_index_equal(exp_idx, result.columns) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_to_julian_date.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_to_julian_date.py new file mode 100644 index 0000000000000000000000000000000000000000..fc1f0595c21c527816acedf6ef97839ce7d71713 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_to_julian_date.py @@ -0,0 +1,45 @@ +import numpy as np + +from pandas import ( + Index, + Timestamp, + date_range, +) +import pandas._testing as tm + + +class TestDateTimeIndexToJulianDate: + def test_1700(self): + dr = date_range(start=Timestamp("1710-10-01"), periods=5, freq="D") + r1 = Index([x.to_julian_date() for x in dr]) + r2 = dr.to_julian_date() + assert isinstance(r2, Index) and r2.dtype == np.float64 + tm.assert_index_equal(r1, r2) + + def test_2000(self): + dr = date_range(start=Timestamp("2000-02-27"), periods=5, freq="D") + r1 = Index([x.to_julian_date() for x in dr]) + r2 = dr.to_julian_date() + assert isinstance(r2, Index) and r2.dtype == np.float64 + tm.assert_index_equal(r1, r2) + + def test_hour(self): + dr = date_range(start=Timestamp("2000-02-27"), periods=5, freq="h") + r1 = Index([x.to_julian_date() for x in dr]) + r2 = dr.to_julian_date() + assert isinstance(r2, Index) and r2.dtype == np.float64 + tm.assert_index_equal(r1, r2) + + def test_minute(self): + dr = date_range(start=Timestamp("2000-02-27"), periods=5, freq="min") + r1 = Index([x.to_julian_date() for x in dr]) + r2 = dr.to_julian_date() + assert isinstance(r2, Index) and r2.dtype == np.float64 + tm.assert_index_equal(r1, r2) + + def test_second(self): + dr = date_range(start=Timestamp("2000-02-27"), periods=5, freq="s") + r1 = Index([x.to_julian_date() for x in dr]) + r2 = dr.to_julian_date() + assert isinstance(r2, Index) and r2.dtype == np.float64 + tm.assert_index_equal(r1, r2) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_to_period.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_to_period.py new file mode 100644 index 0000000000000000000000000000000000000000..de8d32f64cde26b2fa0a0720cbdacc56f6c2e983 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_to_period.py @@ -0,0 +1,225 @@ +import dateutil.tz +from dateutil.tz import tzlocal +import pytest +import pytz + +from pandas._libs.tslibs.ccalendar import MONTHS +from pandas._libs.tslibs.offsets import MonthEnd +from pandas._libs.tslibs.period import INVALID_FREQ_ERR_MSG + +from pandas import ( + DatetimeIndex, + Period, + PeriodIndex, + Timestamp, + date_range, + period_range, +) +import pandas._testing as tm + + +class TestToPeriod: + def test_dti_to_period(self): + dti = date_range(start="1/1/2005", end="12/1/2005", freq="ME") + pi1 = dti.to_period() + pi2 = dti.to_period(freq="D") + pi3 = dti.to_period(freq="3D") + + assert pi1[0] == Period("Jan 2005", freq="M") + assert pi2[0] == Period("1/31/2005", freq="D") + assert pi3[0] == Period("1/31/2005", freq="3D") + + assert pi1[-1] == Period("Nov 2005", freq="M") + assert pi2[-1] == Period("11/30/2005", freq="D") + assert pi3[-1], Period("11/30/2005", freq="3D") + + tm.assert_index_equal(pi1, period_range("1/1/2005", "11/1/2005", freq="M")) + tm.assert_index_equal( + pi2, period_range("1/1/2005", "11/1/2005", freq="M").asfreq("D") + ) + tm.assert_index_equal( + pi3, period_range("1/1/2005", "11/1/2005", freq="M").asfreq("3D") + ) + + @pytest.mark.parametrize("month", MONTHS) + def test_to_period_quarterly(self, month): + # make sure we can make the round trip + freq = f"Q-{month}" + rng = period_range("1989Q3", "1991Q3", freq=freq) + stamps = rng.to_timestamp() + result = stamps.to_period(freq) + tm.assert_index_equal(rng, result) + + @pytest.mark.parametrize("off", ["BQE", "QS", "BQS"]) + def test_to_period_quarterlyish(self, off): + rng = date_range("01-Jan-2012", periods=8, freq=off) + prng = rng.to_period() + assert prng.freq == "QE-DEC" + + @pytest.mark.parametrize("off", ["BYE", "YS", "BYS"]) + def test_to_period_annualish(self, off): + rng = date_range("01-Jan-2012", periods=8, freq=off) + prng = rng.to_period() + assert prng.freq == "YE-DEC" + + def test_to_period_monthish(self): + offsets = ["MS", "BME"] + for off in offsets: + rng = date_range("01-Jan-2012", periods=8, freq=off) + prng = rng.to_period() + assert prng.freqstr == "M" + + rng = date_range("01-Jan-2012", periods=8, freq="ME") + prng = rng.to_period() + assert prng.freqstr == "M" + + with pytest.raises(ValueError, match=INVALID_FREQ_ERR_MSG): + date_range("01-Jan-2012", periods=8, freq="EOM") + + @pytest.mark.parametrize( + "freq_offset, freq_period", + [ + ("2ME", "2M"), + (MonthEnd(2), MonthEnd(2)), + ], + ) + def test_dti_to_period_2monthish(self, freq_offset, freq_period): + dti = date_range("2020-01-01", periods=3, freq=freq_offset) + pi = dti.to_period() + + tm.assert_index_equal(pi, period_range("2020-01", "2020-05", freq=freq_period)) + + @pytest.mark.parametrize( + "freq, freq_depr", + [ + ("2ME", "2M"), + ("2QE", "2Q"), + ("2QE-SEP", "2Q-SEP"), + ("1YE", "1Y"), + ("2YE-MAR", "2Y-MAR"), + ("1YE", "1A"), + ("2YE-MAR", "2A-MAR"), + ], + ) + def test_to_period_frequency_M_Q_Y_A_deprecated(self, freq, freq_depr): + # GH#9586 + msg = f"'{freq_depr[1:]}' is deprecated and will be removed " + f"in a future version, please use '{freq[1:]}' instead." + + rng = date_range("01-Jan-2012", periods=8, freq=freq) + prng = rng.to_period() + with tm.assert_produces_warning(FutureWarning, match=msg): + assert prng.freq == freq_depr + + def test_to_period_infer(self): + # https://github.com/pandas-dev/pandas/issues/33358 + rng = date_range( + start="2019-12-22 06:40:00+00:00", + end="2019-12-22 08:45:00+00:00", + freq="5min", + ) + + with tm.assert_produces_warning(UserWarning): + pi1 = rng.to_period("5min") + + with tm.assert_produces_warning(UserWarning): + pi2 = rng.to_period() + + tm.assert_index_equal(pi1, pi2) + + @pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") + def test_period_dt64_round_trip(self): + dti = date_range("1/1/2000", "1/7/2002", freq="B") + pi = dti.to_period() + tm.assert_index_equal(pi.to_timestamp(), dti) + + dti = date_range("1/1/2000", "1/7/2002", freq="B") + pi = dti.to_period(freq="h") + tm.assert_index_equal(pi.to_timestamp(), dti) + + def test_to_period_millisecond(self): + index = DatetimeIndex( + [ + Timestamp("2007-01-01 10:11:12.123456Z"), + Timestamp("2007-01-01 10:11:13.789123Z"), + ] + ) + + with tm.assert_produces_warning(UserWarning): + # warning that timezone info will be lost + period = index.to_period(freq="ms") + assert 2 == len(period) + assert period[0] == Period("2007-01-01 10:11:12.123Z", "ms") + assert period[1] == Period("2007-01-01 10:11:13.789Z", "ms") + + def test_to_period_microsecond(self): + index = DatetimeIndex( + [ + Timestamp("2007-01-01 10:11:12.123456Z"), + Timestamp("2007-01-01 10:11:13.789123Z"), + ] + ) + + with tm.assert_produces_warning(UserWarning): + # warning that timezone info will be lost + period = index.to_period(freq="us") + assert 2 == len(period) + assert period[0] == Period("2007-01-01 10:11:12.123456Z", "us") + assert period[1] == Period("2007-01-01 10:11:13.789123Z", "us") + + @pytest.mark.parametrize( + "tz", + ["US/Eastern", pytz.utc, tzlocal(), "dateutil/US/Eastern", dateutil.tz.tzutc()], + ) + def test_to_period_tz(self, tz): + ts = date_range("1/1/2000", "2/1/2000", tz=tz) + + with tm.assert_produces_warning(UserWarning): + # GH#21333 warning that timezone info will be lost + # filter warning about freq deprecation + + result = ts.to_period()[0] + expected = ts[0].to_period(ts.freq) + + assert result == expected + + expected = date_range("1/1/2000", "2/1/2000").to_period() + + with tm.assert_produces_warning(UserWarning): + # GH#21333 warning that timezone info will be lost + result = ts.to_period(ts.freq) + + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("tz", ["Etc/GMT-1", "Etc/GMT+1"]) + def test_to_period_tz_utc_offset_consistency(self, tz): + # GH#22905 + ts = date_range("1/1/2000", "2/1/2000", tz="Etc/GMT-1") + with tm.assert_produces_warning(UserWarning): + result = ts.to_period()[0] + expected = ts[0].to_period(ts.freq) + assert result == expected + + def test_to_period_nofreq(self): + idx = DatetimeIndex(["2000-01-01", "2000-01-02", "2000-01-04"]) + msg = "You must pass a freq argument as current index has none." + with pytest.raises(ValueError, match=msg): + idx.to_period() + + idx = DatetimeIndex(["2000-01-01", "2000-01-02", "2000-01-03"], freq="infer") + assert idx.freqstr == "D" + expected = PeriodIndex(["2000-01-01", "2000-01-02", "2000-01-03"], freq="D") + tm.assert_index_equal(idx.to_period(), expected) + + # GH#7606 + idx = DatetimeIndex(["2000-01-01", "2000-01-02", "2000-01-03"]) + assert idx.freqstr is None + tm.assert_index_equal(idx.to_period(), expected) + + @pytest.mark.parametrize("freq", ["2BMS", "1SME-15"]) + def test_to_period_offsets_not_supported(self, freq): + # GH#56243 + msg = f"{freq[1:]} is not supported as period frequency" + ts = date_range("1/1/2012", periods=4, freq=freq) + with pytest.raises(ValueError, match=msg): + ts.to_period() diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_to_pydatetime.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_to_pydatetime.py new file mode 100644 index 0000000000000000000000000000000000000000..fe97ff0cca8ebe6d04ce093077d6ee44d73a7e0b --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_to_pydatetime.py @@ -0,0 +1,51 @@ +from datetime import ( + datetime, + timezone, +) + +import dateutil.parser +import dateutil.tz +from dateutil.tz import tzlocal +import numpy as np + +from pandas import ( + DatetimeIndex, + date_range, + to_datetime, +) +import pandas._testing as tm +from pandas.tests.indexes.datetimes.test_timezones import FixedOffset + +fixed_off = FixedOffset(-420, "-07:00") + + +class TestToPyDatetime: + def test_dti_to_pydatetime(self): + dt = dateutil.parser.parse("2012-06-13T01:39:00Z") + dt = dt.replace(tzinfo=tzlocal()) + + arr = np.array([dt], dtype=object) + + result = to_datetime(arr, utc=True) + assert result.tz is timezone.utc + + rng = date_range("2012-11-03 03:00", "2012-11-05 03:00", tz=tzlocal()) + arr = rng.to_pydatetime() + result = to_datetime(arr, utc=True) + assert result.tz is timezone.utc + + def test_dti_to_pydatetime_fizedtz(self): + dates = np.array( + [ + datetime(2000, 1, 1, tzinfo=fixed_off), + datetime(2000, 1, 2, tzinfo=fixed_off), + datetime(2000, 1, 3, tzinfo=fixed_off), + ] + ) + dti = DatetimeIndex(dates) + + result = dti.to_pydatetime() + tm.assert_numpy_array_equal(dates, result) + + result = dti._mpl_repr() + tm.assert_numpy_array_equal(dates, result) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_to_series.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_to_series.py new file mode 100644 index 0000000000000000000000000000000000000000..0c397c8ab2cd310a2d4fdf59992ea4d123370ee0 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_to_series.py @@ -0,0 +1,18 @@ +import numpy as np + +from pandas import ( + DatetimeIndex, + Series, +) +import pandas._testing as tm + + +class TestToSeries: + def test_to_series(self): + naive = DatetimeIndex(["2013-1-1 13:00", "2013-1-2 14:00"], name="B") + idx = naive.tz_localize("US/Pacific") + + expected = Series(np.array(idx.tolist(), dtype="object"), name="B") + result = idx.to_series(index=[0, 1]) + assert expected.dtype == idx.dtype + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_tz_convert.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_tz_convert.py new file mode 100644 index 0000000000000000000000000000000000000000..b2cf488ac8313c527bd4eb489abc4a11ff820988 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_tz_convert.py @@ -0,0 +1,283 @@ +from datetime import datetime + +import dateutil.tz +from dateutil.tz import gettz +import numpy as np +import pytest +import pytz + +from pandas._libs.tslibs import timezones + +from pandas import ( + DatetimeIndex, + Index, + NaT, + Timestamp, + date_range, + offsets, +) +import pandas._testing as tm + + +class TestTZConvert: + def test_tz_convert_nat(self): + # GH#5546 + dates = [NaT] + idx = DatetimeIndex(dates) + idx = idx.tz_localize("US/Pacific") + tm.assert_index_equal(idx, DatetimeIndex(dates, tz="US/Pacific")) + idx = idx.tz_convert("US/Eastern") + tm.assert_index_equal(idx, DatetimeIndex(dates, tz="US/Eastern")) + idx = idx.tz_convert("UTC") + tm.assert_index_equal(idx, DatetimeIndex(dates, tz="UTC")) + + dates = ["2010-12-01 00:00", "2010-12-02 00:00", NaT] + idx = DatetimeIndex(dates) + idx = idx.tz_localize("US/Pacific") + tm.assert_index_equal(idx, DatetimeIndex(dates, tz="US/Pacific")) + idx = idx.tz_convert("US/Eastern") + expected = ["2010-12-01 03:00", "2010-12-02 03:00", NaT] + tm.assert_index_equal(idx, DatetimeIndex(expected, tz="US/Eastern")) + + idx = idx + offsets.Hour(5) + expected = ["2010-12-01 08:00", "2010-12-02 08:00", NaT] + tm.assert_index_equal(idx, DatetimeIndex(expected, tz="US/Eastern")) + idx = idx.tz_convert("US/Pacific") + expected = ["2010-12-01 05:00", "2010-12-02 05:00", NaT] + tm.assert_index_equal(idx, DatetimeIndex(expected, tz="US/Pacific")) + + idx = idx + np.timedelta64(3, "h") + expected = ["2010-12-01 08:00", "2010-12-02 08:00", NaT] + tm.assert_index_equal(idx, DatetimeIndex(expected, tz="US/Pacific")) + + idx = idx.tz_convert("US/Eastern") + expected = ["2010-12-01 11:00", "2010-12-02 11:00", NaT] + tm.assert_index_equal(idx, DatetimeIndex(expected, tz="US/Eastern")) + + @pytest.mark.parametrize("prefix", ["", "dateutil/"]) + def test_dti_tz_convert_compat_timestamp(self, prefix): + strdates = ["1/1/2012", "3/1/2012", "4/1/2012"] + idx = DatetimeIndex(strdates, tz=prefix + "US/Eastern") + + conv = idx[0].tz_convert(prefix + "US/Pacific") + expected = idx.tz_convert(prefix + "US/Pacific")[0] + + assert conv == expected + + def test_dti_tz_convert_hour_overflow_dst(self): + # Regression test for GH#13306 + + # sorted case US/Eastern -> UTC + ts = ["2008-05-12 09:50:00", "2008-12-12 09:50:35", "2009-05-12 09:50:32"] + tt = DatetimeIndex(ts).tz_localize("US/Eastern") + ut = tt.tz_convert("UTC") + expected = Index([13, 14, 13], dtype=np.int32) + tm.assert_index_equal(ut.hour, expected) + + # sorted case UTC -> US/Eastern + ts = ["2008-05-12 13:50:00", "2008-12-12 14:50:35", "2009-05-12 13:50:32"] + tt = DatetimeIndex(ts).tz_localize("UTC") + ut = tt.tz_convert("US/Eastern") + expected = Index([9, 9, 9], dtype=np.int32) + tm.assert_index_equal(ut.hour, expected) + + # unsorted case US/Eastern -> UTC + ts = ["2008-05-12 09:50:00", "2008-12-12 09:50:35", "2008-05-12 09:50:32"] + tt = DatetimeIndex(ts).tz_localize("US/Eastern") + ut = tt.tz_convert("UTC") + expected = Index([13, 14, 13], dtype=np.int32) + tm.assert_index_equal(ut.hour, expected) + + # unsorted case UTC -> US/Eastern + ts = ["2008-05-12 13:50:00", "2008-12-12 14:50:35", "2008-05-12 13:50:32"] + tt = DatetimeIndex(ts).tz_localize("UTC") + ut = tt.tz_convert("US/Eastern") + expected = Index([9, 9, 9], dtype=np.int32) + tm.assert_index_equal(ut.hour, expected) + + @pytest.mark.parametrize("tz", ["US/Eastern", "dateutil/US/Eastern"]) + def test_dti_tz_convert_hour_overflow_dst_timestamps(self, tz): + # Regression test for GH#13306 + + # sorted case US/Eastern -> UTC + ts = [ + Timestamp("2008-05-12 09:50:00", tz=tz), + Timestamp("2008-12-12 09:50:35", tz=tz), + Timestamp("2009-05-12 09:50:32", tz=tz), + ] + tt = DatetimeIndex(ts) + ut = tt.tz_convert("UTC") + expected = Index([13, 14, 13], dtype=np.int32) + tm.assert_index_equal(ut.hour, expected) + + # sorted case UTC -> US/Eastern + ts = [ + Timestamp("2008-05-12 13:50:00", tz="UTC"), + Timestamp("2008-12-12 14:50:35", tz="UTC"), + Timestamp("2009-05-12 13:50:32", tz="UTC"), + ] + tt = DatetimeIndex(ts) + ut = tt.tz_convert("US/Eastern") + expected = Index([9, 9, 9], dtype=np.int32) + tm.assert_index_equal(ut.hour, expected) + + # unsorted case US/Eastern -> UTC + ts = [ + Timestamp("2008-05-12 09:50:00", tz=tz), + Timestamp("2008-12-12 09:50:35", tz=tz), + Timestamp("2008-05-12 09:50:32", tz=tz), + ] + tt = DatetimeIndex(ts) + ut = tt.tz_convert("UTC") + expected = Index([13, 14, 13], dtype=np.int32) + tm.assert_index_equal(ut.hour, expected) + + # unsorted case UTC -> US/Eastern + ts = [ + Timestamp("2008-05-12 13:50:00", tz="UTC"), + Timestamp("2008-12-12 14:50:35", tz="UTC"), + Timestamp("2008-05-12 13:50:32", tz="UTC"), + ] + tt = DatetimeIndex(ts) + ut = tt.tz_convert("US/Eastern") + expected = Index([9, 9, 9], dtype=np.int32) + tm.assert_index_equal(ut.hour, expected) + + @pytest.mark.parametrize("freq, n", [("h", 1), ("min", 60), ("s", 3600)]) + def test_dti_tz_convert_trans_pos_plus_1__bug(self, freq, n): + # Regression test for tslib.tz_convert(vals, tz1, tz2). + # See GH#4496 for details. + idx = date_range(datetime(2011, 3, 26, 23), datetime(2011, 3, 27, 1), freq=freq) + idx = idx.tz_localize("UTC") + idx = idx.tz_convert("Europe/Moscow") + + expected = np.repeat(np.array([3, 4, 5]), np.array([n, n, 1])) + tm.assert_index_equal(idx.hour, Index(expected, dtype=np.int32)) + + def test_dti_tz_convert_dst(self): + for freq, n in [("h", 1), ("min", 60), ("s", 3600)]: + # Start DST + idx = date_range( + "2014-03-08 23:00", "2014-03-09 09:00", freq=freq, tz="UTC" + ) + idx = idx.tz_convert("US/Eastern") + expected = np.repeat( + np.array([18, 19, 20, 21, 22, 23, 0, 1, 3, 4, 5]), + np.array([n, n, n, n, n, n, n, n, n, n, 1]), + ) + tm.assert_index_equal(idx.hour, Index(expected, dtype=np.int32)) + + idx = date_range( + "2014-03-08 18:00", "2014-03-09 05:00", freq=freq, tz="US/Eastern" + ) + idx = idx.tz_convert("UTC") + expected = np.repeat( + np.array([23, 0, 1, 2, 3, 4, 5, 6, 7, 8, 9]), + np.array([n, n, n, n, n, n, n, n, n, n, 1]), + ) + tm.assert_index_equal(idx.hour, Index(expected, dtype=np.int32)) + + # End DST + idx = date_range( + "2014-11-01 23:00", "2014-11-02 09:00", freq=freq, tz="UTC" + ) + idx = idx.tz_convert("US/Eastern") + expected = np.repeat( + np.array([19, 20, 21, 22, 23, 0, 1, 1, 2, 3, 4]), + np.array([n, n, n, n, n, n, n, n, n, n, 1]), + ) + tm.assert_index_equal(idx.hour, Index(expected, dtype=np.int32)) + + idx = date_range( + "2014-11-01 18:00", "2014-11-02 05:00", freq=freq, tz="US/Eastern" + ) + idx = idx.tz_convert("UTC") + expected = np.repeat( + np.array([22, 23, 0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10]), + np.array([n, n, n, n, n, n, n, n, n, n, n, n, 1]), + ) + tm.assert_index_equal(idx.hour, Index(expected, dtype=np.int32)) + + # daily + # Start DST + idx = date_range("2014-03-08 00:00", "2014-03-09 00:00", freq="D", tz="UTC") + idx = idx.tz_convert("US/Eastern") + tm.assert_index_equal(idx.hour, Index([19, 19], dtype=np.int32)) + + idx = date_range( + "2014-03-08 00:00", "2014-03-09 00:00", freq="D", tz="US/Eastern" + ) + idx = idx.tz_convert("UTC") + tm.assert_index_equal(idx.hour, Index([5, 5], dtype=np.int32)) + + # End DST + idx = date_range("2014-11-01 00:00", "2014-11-02 00:00", freq="D", tz="UTC") + idx = idx.tz_convert("US/Eastern") + tm.assert_index_equal(idx.hour, Index([20, 20], dtype=np.int32)) + + idx = date_range( + "2014-11-01 00:00", "2014-11-02 000:00", freq="D", tz="US/Eastern" + ) + idx = idx.tz_convert("UTC") + tm.assert_index_equal(idx.hour, Index([4, 4], dtype=np.int32)) + + def test_tz_convert_roundtrip(self, tz_aware_fixture): + tz = tz_aware_fixture + idx1 = date_range(start="2014-01-01", end="2014-12-31", freq="ME", tz="UTC") + exp1 = date_range(start="2014-01-01", end="2014-12-31", freq="ME") + + idx2 = date_range(start="2014-01-01", end="2014-12-31", freq="D", tz="UTC") + exp2 = date_range(start="2014-01-01", end="2014-12-31", freq="D") + + idx3 = date_range(start="2014-01-01", end="2014-03-01", freq="h", tz="UTC") + exp3 = date_range(start="2014-01-01", end="2014-03-01", freq="h") + + idx4 = date_range(start="2014-08-01", end="2014-10-31", freq="min", tz="UTC") + exp4 = date_range(start="2014-08-01", end="2014-10-31", freq="min") + + for idx, expected in [(idx1, exp1), (idx2, exp2), (idx3, exp3), (idx4, exp4)]: + converted = idx.tz_convert(tz) + reset = converted.tz_convert(None) + tm.assert_index_equal(reset, expected) + assert reset.tzinfo is None + expected = converted.tz_convert("UTC").tz_localize(None) + expected = expected._with_freq("infer") + tm.assert_index_equal(reset, expected) + + def test_dti_tz_convert_tzlocal(self): + # GH#13583 + # tz_convert doesn't affect to internal + dti = date_range(start="2001-01-01", end="2001-03-01", tz="UTC") + dti2 = dti.tz_convert(dateutil.tz.tzlocal()) + tm.assert_numpy_array_equal(dti2.asi8, dti.asi8) + + dti = date_range(start="2001-01-01", end="2001-03-01", tz=dateutil.tz.tzlocal()) + dti2 = dti.tz_convert(None) + tm.assert_numpy_array_equal(dti2.asi8, dti.asi8) + + @pytest.mark.parametrize( + "tz", + [ + "US/Eastern", + "dateutil/US/Eastern", + pytz.timezone("US/Eastern"), + gettz("US/Eastern"), + ], + ) + def test_dti_tz_convert_utc_to_local_no_modify(self, tz): + rng = date_range("3/11/2012", "3/12/2012", freq="h", tz="utc") + rng_eastern = rng.tz_convert(tz) + + # Values are unmodified + tm.assert_numpy_array_equal(rng.asi8, rng_eastern.asi8) + + assert timezones.tz_compare(rng_eastern.tz, timezones.maybe_get_tz(tz)) + + @pytest.mark.parametrize("tzstr", ["US/Eastern", "dateutil/US/Eastern"]) + def test_tz_convert_unsorted(self, tzstr): + dr = date_range("2012-03-09", freq="h", periods=100, tz="utc") + dr = dr.tz_convert(tzstr) + + result = dr[::-1].hour + exp = dr.hour[::-1] + tm.assert_almost_equal(result, exp) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_tz_localize.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_tz_localize.py new file mode 100644 index 0000000000000000000000000000000000000000..ad7769c6b96714b30fe4f3a1e1468de05ec1e6f2 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_tz_localize.py @@ -0,0 +1,402 @@ +from datetime import ( + datetime, + timedelta, +) + +import dateutil.tz +from dateutil.tz import gettz +import numpy as np +import pytest +import pytz + +from pandas import ( + DatetimeIndex, + Timestamp, + bdate_range, + date_range, + offsets, + to_datetime, +) +import pandas._testing as tm + +try: + from zoneinfo import ZoneInfo +except ImportError: + # Cannot assign to a type [misc] + ZoneInfo = None # type: ignore[misc, assignment] + + +easts = [pytz.timezone("US/Eastern"), gettz("US/Eastern")] +if ZoneInfo is not None: + try: + tz = ZoneInfo("US/Eastern") + except KeyError: + # no tzdata + pass + else: + easts.append(tz) + + +class TestTZLocalize: + def test_tz_localize_invalidates_freq(self): + # we only preserve freq in unambiguous cases + + # if localized to US/Eastern, this crosses a DST transition + dti = date_range("2014-03-08 23:00", "2014-03-09 09:00", freq="h") + assert dti.freq == "h" + + result = dti.tz_localize(None) # no-op + assert result.freq == "h" + + result = dti.tz_localize("UTC") # unambiguous freq preservation + assert result.freq == "h" + + result = dti.tz_localize("US/Eastern", nonexistent="shift_forward") + assert result.freq is None + assert result.inferred_freq is None # i.e. we are not _too_ strict here + + # Case where we _can_ keep freq because we're length==1 + dti2 = dti[:1] + result = dti2.tz_localize("US/Eastern") + assert result.freq == "h" + + def test_tz_localize_utc_copies(self, utc_fixture): + # GH#46460 + times = ["2015-03-08 01:00", "2015-03-08 02:00", "2015-03-08 03:00"] + index = DatetimeIndex(times) + + res = index.tz_localize(utc_fixture) + assert not tm.shares_memory(res, index) + + res2 = index._data.tz_localize(utc_fixture) + assert not tm.shares_memory(index._data, res2) + + def test_dti_tz_localize_nonexistent_raise_coerce(self): + # GH#13057 + times = ["2015-03-08 01:00", "2015-03-08 02:00", "2015-03-08 03:00"] + index = DatetimeIndex(times) + tz = "US/Eastern" + with pytest.raises(pytz.NonExistentTimeError, match="|".join(times)): + index.tz_localize(tz=tz) + + with pytest.raises(pytz.NonExistentTimeError, match="|".join(times)): + index.tz_localize(tz=tz, nonexistent="raise") + + result = index.tz_localize(tz=tz, nonexistent="NaT") + test_times = ["2015-03-08 01:00-05:00", "NaT", "2015-03-08 03:00-04:00"] + dti = to_datetime(test_times, utc=True) + expected = dti.tz_convert("US/Eastern") + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("tz", easts) + def test_dti_tz_localize_ambiguous_infer(self, tz): + # November 6, 2011, fall back, repeat 2 AM hour + # With no repeated hours, we cannot infer the transition + dr = date_range(datetime(2011, 11, 6, 0), periods=5, freq=offsets.Hour()) + with pytest.raises(pytz.AmbiguousTimeError, match="Cannot infer dst time"): + dr.tz_localize(tz) + + @pytest.mark.parametrize("tz", easts) + def test_dti_tz_localize_ambiguous_infer2(self, tz, unit): + # With repeated hours, we can infer the transition + dr = date_range( + datetime(2011, 11, 6, 0), periods=5, freq=offsets.Hour(), tz=tz, unit=unit + ) + times = [ + "11/06/2011 00:00", + "11/06/2011 01:00", + "11/06/2011 01:00", + "11/06/2011 02:00", + "11/06/2011 03:00", + ] + di = DatetimeIndex(times).as_unit(unit) + result = di.tz_localize(tz, ambiguous="infer") + expected = dr._with_freq(None) + tm.assert_index_equal(result, expected) + result2 = DatetimeIndex(times, tz=tz, ambiguous="infer").as_unit(unit) + tm.assert_index_equal(result2, expected) + + @pytest.mark.parametrize("tz", easts) + def test_dti_tz_localize_ambiguous_infer3(self, tz): + # When there is no dst transition, nothing special happens + dr = date_range(datetime(2011, 6, 1, 0), periods=10, freq=offsets.Hour()) + localized = dr.tz_localize(tz) + localized_infer = dr.tz_localize(tz, ambiguous="infer") + tm.assert_index_equal(localized, localized_infer) + + @pytest.mark.parametrize("tz", easts) + def test_dti_tz_localize_ambiguous_times(self, tz): + # March 13, 2011, spring forward, skip from 2 AM to 3 AM + dr = date_range(datetime(2011, 3, 13, 1, 30), periods=3, freq=offsets.Hour()) + with pytest.raises(pytz.NonExistentTimeError, match="2011-03-13 02:30:00"): + dr.tz_localize(tz) + + # after dst transition, it works + dr = date_range( + datetime(2011, 3, 13, 3, 30), periods=3, freq=offsets.Hour(), tz=tz + ) + + # November 6, 2011, fall back, repeat 2 AM hour + dr = date_range(datetime(2011, 11, 6, 1, 30), periods=3, freq=offsets.Hour()) + with pytest.raises(pytz.AmbiguousTimeError, match="Cannot infer dst time"): + dr.tz_localize(tz) + + # UTC is OK + dr = date_range( + datetime(2011, 3, 13), periods=48, freq=offsets.Minute(30), tz=pytz.utc + ) + + @pytest.mark.parametrize("tzstr", ["US/Eastern", "dateutil/US/Eastern"]) + def test_dti_tz_localize_pass_dates_to_utc(self, tzstr): + strdates = ["1/1/2012", "3/1/2012", "4/1/2012"] + + idx = DatetimeIndex(strdates) + conv = idx.tz_localize(tzstr) + + fromdates = DatetimeIndex(strdates, tz=tzstr) + + assert conv.tz == fromdates.tz + tm.assert_numpy_array_equal(conv.values, fromdates.values) + + @pytest.mark.parametrize("prefix", ["", "dateutil/"]) + def test_dti_tz_localize(self, prefix): + tzstr = prefix + "US/Eastern" + dti = date_range(start="1/1/2005", end="1/1/2005 0:00:30.256", freq="ms") + dti2 = dti.tz_localize(tzstr) + + dti_utc = date_range( + start="1/1/2005 05:00", end="1/1/2005 5:00:30.256", freq="ms", tz="utc" + ) + + tm.assert_numpy_array_equal(dti2.values, dti_utc.values) + + dti3 = dti2.tz_convert(prefix + "US/Pacific") + tm.assert_numpy_array_equal(dti3.values, dti_utc.values) + + dti = date_range(start="11/6/2011 1:59", end="11/6/2011 2:00", freq="ms") + with pytest.raises(pytz.AmbiguousTimeError, match="Cannot infer dst time"): + dti.tz_localize(tzstr) + + dti = date_range(start="3/13/2011 1:59", end="3/13/2011 2:00", freq="ms") + with pytest.raises(pytz.NonExistentTimeError, match="2011-03-13 02:00:00"): + dti.tz_localize(tzstr) + + @pytest.mark.parametrize( + "tz", + [ + "US/Eastern", + "dateutil/US/Eastern", + pytz.timezone("US/Eastern"), + gettz("US/Eastern"), + ], + ) + def test_dti_tz_localize_utc_conversion(self, tz): + # Localizing to time zone should: + # 1) check for DST ambiguities + # 2) convert to UTC + + rng = date_range("3/10/2012", "3/11/2012", freq="30min") + + converted = rng.tz_localize(tz) + expected_naive = rng + offsets.Hour(5) + tm.assert_numpy_array_equal(converted.asi8, expected_naive.asi8) + + # DST ambiguity, this should fail + rng = date_range("3/11/2012", "3/12/2012", freq="30min") + # Is this really how it should fail?? + with pytest.raises(pytz.NonExistentTimeError, match="2012-03-11 02:00:00"): + rng.tz_localize(tz) + + def test_dti_tz_localize_roundtrip(self, tz_aware_fixture): + # note: this tz tests that a tz-naive index can be localized + # and de-localized successfully, when there are no DST transitions + # in the range. + idx = date_range(start="2014-06-01", end="2014-08-30", freq="15min") + tz = tz_aware_fixture + localized = idx.tz_localize(tz) + # can't localize a tz-aware object + with pytest.raises( + TypeError, match="Already tz-aware, use tz_convert to convert" + ): + localized.tz_localize(tz) + reset = localized.tz_localize(None) + assert reset.tzinfo is None + expected = idx._with_freq(None) + tm.assert_index_equal(reset, expected) + + def test_dti_tz_localize_naive(self): + rng = date_range("1/1/2011", periods=100, freq="h") + + conv = rng.tz_localize("US/Pacific") + exp = date_range("1/1/2011", periods=100, freq="h", tz="US/Pacific") + + tm.assert_index_equal(conv, exp._with_freq(None)) + + def test_dti_tz_localize_tzlocal(self): + # GH#13583 + offset = dateutil.tz.tzlocal().utcoffset(datetime(2011, 1, 1)) + offset = int(offset.total_seconds() * 1000000000) + + dti = date_range(start="2001-01-01", end="2001-03-01") + dti2 = dti.tz_localize(dateutil.tz.tzlocal()) + tm.assert_numpy_array_equal(dti2.asi8 + offset, dti.asi8) + + dti = date_range(start="2001-01-01", end="2001-03-01", tz=dateutil.tz.tzlocal()) + dti2 = dti.tz_localize(None) + tm.assert_numpy_array_equal(dti2.asi8 - offset, dti.asi8) + + @pytest.mark.parametrize("tz", easts) + def test_dti_tz_localize_ambiguous_nat(self, tz): + times = [ + "11/06/2011 00:00", + "11/06/2011 01:00", + "11/06/2011 01:00", + "11/06/2011 02:00", + "11/06/2011 03:00", + ] + di = DatetimeIndex(times) + localized = di.tz_localize(tz, ambiguous="NaT") + + times = [ + "11/06/2011 00:00", + np.nan, + np.nan, + "11/06/2011 02:00", + "11/06/2011 03:00", + ] + di_test = DatetimeIndex(times, tz="US/Eastern") + + # left dtype is datetime64[ns, US/Eastern] + # right is datetime64[ns, tzfile('/usr/share/zoneinfo/US/Eastern')] + tm.assert_numpy_array_equal(di_test.values, localized.values) + + @pytest.mark.parametrize("tz", easts) + def test_dti_tz_localize_ambiguous_flags(self, tz, unit): + # November 6, 2011, fall back, repeat 2 AM hour + + # Pass in flags to determine right dst transition + dr = date_range( + datetime(2011, 11, 6, 0), periods=5, freq=offsets.Hour(), tz=tz, unit=unit + ) + times = [ + "11/06/2011 00:00", + "11/06/2011 01:00", + "11/06/2011 01:00", + "11/06/2011 02:00", + "11/06/2011 03:00", + ] + + # Test tz_localize + di = DatetimeIndex(times).as_unit(unit) + is_dst = [1, 1, 0, 0, 0] + localized = di.tz_localize(tz, ambiguous=is_dst) + expected = dr._with_freq(None) + tm.assert_index_equal(expected, localized) + + result = DatetimeIndex(times, tz=tz, ambiguous=is_dst).as_unit(unit) + tm.assert_index_equal(result, expected) + + localized = di.tz_localize(tz, ambiguous=np.array(is_dst)) + tm.assert_index_equal(dr, localized) + + localized = di.tz_localize(tz, ambiguous=np.array(is_dst).astype("bool")) + tm.assert_index_equal(dr, localized) + + # Test constructor + localized = DatetimeIndex(times, tz=tz, ambiguous=is_dst).as_unit(unit) + tm.assert_index_equal(dr, localized) + + # Test duplicate times where inferring the dst fails + times += times + di = DatetimeIndex(times).as_unit(unit) + + # When the sizes are incompatible, make sure error is raised + msg = "Length of ambiguous bool-array must be the same size as vals" + with pytest.raises(Exception, match=msg): + di.tz_localize(tz, ambiguous=is_dst) + + # When sizes are compatible and there are repeats ('infer' won't work) + is_dst = np.hstack((is_dst, is_dst)) + localized = di.tz_localize(tz, ambiguous=is_dst) + dr = dr.append(dr) + tm.assert_index_equal(dr, localized) + + @pytest.mark.parametrize("tz", easts) + def test_dti_tz_localize_ambiguous_flags2(self, tz, unit): + # When there is no dst transition, nothing special happens + dr = date_range(datetime(2011, 6, 1, 0), periods=10, freq=offsets.Hour()) + is_dst = np.array([1] * 10) + localized = dr.tz_localize(tz) + localized_is_dst = dr.tz_localize(tz, ambiguous=is_dst) + tm.assert_index_equal(localized, localized_is_dst) + + def test_dti_tz_localize_bdate_range(self): + dr = bdate_range("1/1/2009", "1/1/2010") + dr_utc = bdate_range("1/1/2009", "1/1/2010", tz=pytz.utc) + localized = dr.tz_localize(pytz.utc) + tm.assert_index_equal(dr_utc, localized) + + @pytest.mark.parametrize( + "start_ts, tz, end_ts, shift", + [ + ["2015-03-29 02:20:00", "Europe/Warsaw", "2015-03-29 03:00:00", "forward"], + [ + "2015-03-29 02:20:00", + "Europe/Warsaw", + "2015-03-29 01:59:59.999999999", + "backward", + ], + [ + "2015-03-29 02:20:00", + "Europe/Warsaw", + "2015-03-29 03:20:00", + timedelta(hours=1), + ], + [ + "2015-03-29 02:20:00", + "Europe/Warsaw", + "2015-03-29 01:20:00", + timedelta(hours=-1), + ], + ["2018-03-11 02:33:00", "US/Pacific", "2018-03-11 03:00:00", "forward"], + [ + "2018-03-11 02:33:00", + "US/Pacific", + "2018-03-11 01:59:59.999999999", + "backward", + ], + [ + "2018-03-11 02:33:00", + "US/Pacific", + "2018-03-11 03:33:00", + timedelta(hours=1), + ], + [ + "2018-03-11 02:33:00", + "US/Pacific", + "2018-03-11 01:33:00", + timedelta(hours=-1), + ], + ], + ) + @pytest.mark.parametrize("tz_type", ["", "dateutil/"]) + def test_dti_tz_localize_nonexistent_shift( + self, start_ts, tz, end_ts, shift, tz_type, unit + ): + # GH#8917 + tz = tz_type + tz + if isinstance(shift, str): + shift = "shift_" + shift + dti = DatetimeIndex([Timestamp(start_ts)]).as_unit(unit) + result = dti.tz_localize(tz, nonexistent=shift) + expected = DatetimeIndex([Timestamp(end_ts)]).tz_localize(tz).as_unit(unit) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("offset", [-1, 1]) + def test_dti_tz_localize_nonexistent_shift_invalid(self, offset, warsaw): + # GH#8917 + tz = warsaw + dti = DatetimeIndex([Timestamp("2015-03-29 02:20:00")]) + msg = "The provided timedelta will relocalize on a nonexistent time" + with pytest.raises(ValueError, match=msg): + dti.tz_localize(tz, nonexistent=timedelta(seconds=offset)) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_unique.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_unique.py new file mode 100644 index 0000000000000000000000000000000000000000..3c419b23c749a16e66458b334b3aec34521c2241 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/methods/test_unique.py @@ -0,0 +1,77 @@ +from datetime import ( + datetime, + timedelta, +) + +from pandas import ( + DatetimeIndex, + NaT, + Timestamp, +) +import pandas._testing as tm + + +def test_unique(tz_naive_fixture): + idx = DatetimeIndex(["2017"] * 2, tz=tz_naive_fixture) + expected = idx[:1] + + result = idx.unique() + tm.assert_index_equal(result, expected) + # GH#21737 + # Ensure the underlying data is consistent + assert result[0] == expected[0] + + +def test_index_unique(rand_series_with_duplicate_datetimeindex): + dups = rand_series_with_duplicate_datetimeindex + index = dups.index + + uniques = index.unique() + expected = DatetimeIndex( + [ + datetime(2000, 1, 2), + datetime(2000, 1, 3), + datetime(2000, 1, 4), + datetime(2000, 1, 5), + ], + dtype=index.dtype, + ) + assert uniques.dtype == index.dtype # sanity + tm.assert_index_equal(uniques, expected) + assert index.nunique() == 4 + + # GH#2563 + assert isinstance(uniques, DatetimeIndex) + + dups_local = index.tz_localize("US/Eastern") + dups_local.name = "foo" + result = dups_local.unique() + expected = DatetimeIndex(expected, name="foo") + expected = expected.tz_localize("US/Eastern") + assert result.tz is not None + assert result.name == "foo" + tm.assert_index_equal(result, expected) + + +def test_index_unique2(): + # NaT, note this is excluded + arr = [1370745748 + t for t in range(20)] + [NaT._value] + idx = DatetimeIndex(arr * 3) + tm.assert_index_equal(idx.unique(), DatetimeIndex(arr)) + assert idx.nunique() == 20 + assert idx.nunique(dropna=False) == 21 + + +def test_index_unique3(): + arr = [ + Timestamp("2013-06-09 02:42:28") + timedelta(seconds=t) for t in range(20) + ] + [NaT] + idx = DatetimeIndex(arr * 3) + tm.assert_index_equal(idx.unique(), DatetimeIndex(arr)) + assert idx.nunique() == 20 + assert idx.nunique(dropna=False) == 21 + + +def test_is_unique_monotonic(rand_series_with_duplicate_datetimeindex): + index = rand_series_with_duplicate_datetimeindex.index + assert not index.is_unique diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_arithmetic.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_arithmetic.py new file mode 100644 index 0000000000000000000000000000000000000000..3a7c418b27de6ddf79c87a813d43f21369ecc367 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_arithmetic.py @@ -0,0 +1,56 @@ +# Arithmetic tests specific to DatetimeIndex are generally about `freq` +# rentention or inference. Other arithmetic tests belong in +# tests/arithmetic/test_datetime64.py +import pytest + +from pandas import ( + Timedelta, + TimedeltaIndex, + Timestamp, + date_range, + timedelta_range, +) +import pandas._testing as tm + + +class TestDatetimeIndexArithmetic: + def test_add_timedelta_preserves_freq(self): + # GH#37295 should hold for any DTI with freq=None or Tick freq + tz = "Canada/Eastern" + dti = date_range( + start=Timestamp("2019-03-26 00:00:00-0400", tz=tz), + end=Timestamp("2020-10-17 00:00:00-0400", tz=tz), + freq="D", + ) + result = dti + Timedelta(days=1) + assert result.freq == dti.freq + + def test_sub_datetime_preserves_freq(self, tz_naive_fixture): + # GH#48818 + dti = date_range("2016-01-01", periods=12, tz=tz_naive_fixture) + + res = dti - dti[0] + expected = timedelta_range("0 Days", "11 Days") + tm.assert_index_equal(res, expected) + assert res.freq == expected.freq + + @pytest.mark.xfail( + reason="The inherited freq is incorrect bc dti.freq is incorrect " + "https://github.com/pandas-dev/pandas/pull/48818/files#r982793461" + ) + def test_sub_datetime_preserves_freq_across_dst(self): + # GH#48818 + ts = Timestamp("2016-03-11", tz="US/Pacific") + dti = date_range(ts, periods=4) + + res = dti - dti[0] + expected = TimedeltaIndex( + [ + Timedelta(days=0), + Timedelta(days=1), + Timedelta(days=2), + Timedelta(days=2, hours=23), + ] + ) + tm.assert_index_equal(res, expected) + assert res.freq == expected.freq diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_constructors.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_constructors.py new file mode 100644 index 0000000000000000000000000000000000000000..2abbcf6688833ff05600d8e360711c8ff973a343 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_constructors.py @@ -0,0 +1,1204 @@ +from __future__ import annotations + +from datetime import ( + datetime, + timedelta, + timezone, +) +from functools import partial +from operator import attrgetter + +import dateutil +import dateutil.tz +from dateutil.tz import gettz +import numpy as np +import pytest +import pytz + +from pandas._libs.tslibs import ( + OutOfBoundsDatetime, + astype_overflowsafe, + timezones, +) + +import pandas as pd +from pandas import ( + DatetimeIndex, + Index, + Timestamp, + date_range, + offsets, + to_datetime, +) +import pandas._testing as tm +from pandas.core.arrays import period_array + + +class TestDatetimeIndex: + def test_closed_deprecated(self): + # GH#52628 + msg = "The 'closed' keyword" + with tm.assert_produces_warning(FutureWarning, match=msg): + DatetimeIndex([], closed=True) + + def test_normalize_deprecated(self): + # GH#52628 + msg = "The 'normalize' keyword" + with tm.assert_produces_warning(FutureWarning, match=msg): + DatetimeIndex([], normalize=True) + + def test_from_dt64_unsupported_unit(self): + # GH#49292 + val = np.datetime64(1, "D") + result = DatetimeIndex([val], tz="US/Pacific") + + expected = DatetimeIndex([val.astype("M8[s]")], tz="US/Pacific") + tm.assert_index_equal(result, expected) + + def test_explicit_tz_none(self): + # GH#48659 + dti = date_range("2016-01-01", periods=10, tz="UTC") + + msg = "Passed data is timezone-aware, incompatible with 'tz=None'" + with pytest.raises(ValueError, match=msg): + DatetimeIndex(dti, tz=None) + + with pytest.raises(ValueError, match=msg): + DatetimeIndex(np.array(dti), tz=None) + + msg = "Cannot pass both a timezone-aware dtype and tz=None" + with pytest.raises(ValueError, match=msg): + DatetimeIndex([], dtype="M8[ns, UTC]", tz=None) + + def test_freq_validation_with_nat(self): + # GH#11587 make sure we get a useful error message when generate_range + # raises + msg = ( + "Inferred frequency None from passed values does not conform " + "to passed frequency D" + ) + with pytest.raises(ValueError, match=msg): + DatetimeIndex([pd.NaT, Timestamp("2011-01-01")], freq="D") + with pytest.raises(ValueError, match=msg): + DatetimeIndex([pd.NaT, Timestamp("2011-01-01")._value], freq="D") + + # TODO: better place for tests shared by DTI/TDI? + @pytest.mark.parametrize( + "index", + [ + date_range("2016-01-01", periods=5, tz="US/Pacific"), + pd.timedelta_range("1 Day", periods=5), + ], + ) + def test_shallow_copy_inherits_array_freq(self, index): + # If we pass a DTA/TDA to shallow_copy and dont specify a freq, + # we should inherit the array's freq, not our own. + array = index._data + + arr = array[[0, 3, 2, 4, 1]] + assert arr.freq is None + + result = index._shallow_copy(arr) + assert result.freq is None + + def test_categorical_preserves_tz(self): + # GH#18664 retain tz when going DTI-->Categorical-->DTI + dti = DatetimeIndex( + [pd.NaT, "2015-01-01", "1999-04-06 15:14:13", "2015-01-01"], tz="US/Eastern" + ) + + for dtobj in [dti, dti._data]: + # works for DatetimeIndex or DatetimeArray + + ci = pd.CategoricalIndex(dtobj) + carr = pd.Categorical(dtobj) + cser = pd.Series(ci) + + for obj in [ci, carr, cser]: + result = DatetimeIndex(obj) + tm.assert_index_equal(result, dti) + + def test_dti_with_period_data_raises(self): + # GH#23675 + data = pd.PeriodIndex(["2016Q1", "2016Q2"], freq="Q") + + with pytest.raises(TypeError, match="PeriodDtype data is invalid"): + DatetimeIndex(data) + + with pytest.raises(TypeError, match="PeriodDtype data is invalid"): + to_datetime(data) + + with pytest.raises(TypeError, match="PeriodDtype data is invalid"): + DatetimeIndex(period_array(data)) + + with pytest.raises(TypeError, match="PeriodDtype data is invalid"): + to_datetime(period_array(data)) + + def test_dti_with_timedelta64_data_raises(self): + # GH#23675 deprecated, enforrced in GH#29794 + data = np.array([0], dtype="m8[ns]") + msg = r"timedelta64\[ns\] cannot be converted to datetime64" + with pytest.raises(TypeError, match=msg): + DatetimeIndex(data) + + with pytest.raises(TypeError, match=msg): + to_datetime(data) + + with pytest.raises(TypeError, match=msg): + DatetimeIndex(pd.TimedeltaIndex(data)) + + with pytest.raises(TypeError, match=msg): + to_datetime(pd.TimedeltaIndex(data)) + + def test_constructor_from_sparse_array(self): + # https://github.com/pandas-dev/pandas/issues/35843 + values = [ + Timestamp("2012-05-01T01:00:00.000000"), + Timestamp("2016-05-01T01:00:00.000000"), + ] + arr = pd.arrays.SparseArray(values) + result = Index(arr) + assert type(result) is Index + assert result.dtype == arr.dtype + + def test_construction_caching(self): + df = pd.DataFrame( + { + "dt": date_range("20130101", periods=3), + "dttz": date_range("20130101", periods=3, tz="US/Eastern"), + "dt_with_null": [ + Timestamp("20130101"), + pd.NaT, + Timestamp("20130103"), + ], + "dtns": date_range("20130101", periods=3, freq="ns"), + } + ) + assert df.dttz.dtype.tz.zone == "US/Eastern" + + @pytest.mark.parametrize( + "kwargs", + [{"tz": "dtype.tz"}, {"dtype": "dtype"}, {"dtype": "dtype", "tz": "dtype.tz"}], + ) + def test_construction_with_alt(self, kwargs, tz_aware_fixture): + tz = tz_aware_fixture + i = date_range("20130101", periods=5, freq="h", tz=tz) + kwargs = {key: attrgetter(val)(i) for key, val in kwargs.items()} + result = DatetimeIndex(i, **kwargs) + tm.assert_index_equal(i, result) + + @pytest.mark.parametrize( + "kwargs", + [{"tz": "dtype.tz"}, {"dtype": "dtype"}, {"dtype": "dtype", "tz": "dtype.tz"}], + ) + def test_construction_with_alt_tz_localize(self, kwargs, tz_aware_fixture): + tz = tz_aware_fixture + i = date_range("20130101", periods=5, freq="h", tz=tz) + i = i._with_freq(None) + kwargs = {key: attrgetter(val)(i) for key, val in kwargs.items()} + + if "tz" in kwargs: + result = DatetimeIndex(i.asi8, tz="UTC").tz_convert(kwargs["tz"]) + + expected = DatetimeIndex(i, **kwargs) + tm.assert_index_equal(result, expected) + + # localize into the provided tz + i2 = DatetimeIndex(i.tz_localize(None).asi8, tz="UTC") + expected = i.tz_localize(None).tz_localize("UTC") + tm.assert_index_equal(i2, expected) + + # incompat tz/dtype + msg = "cannot supply both a tz and a dtype with a tz" + with pytest.raises(ValueError, match=msg): + DatetimeIndex(i.tz_localize(None).asi8, dtype=i.dtype, tz="US/Pacific") + + def test_construction_index_with_mixed_timezones(self): + # gh-11488: no tz results in DatetimeIndex + result = Index([Timestamp("2011-01-01"), Timestamp("2011-01-02")], name="idx") + exp = DatetimeIndex( + [Timestamp("2011-01-01"), Timestamp("2011-01-02")], name="idx" + ) + tm.assert_index_equal(result, exp, exact=True) + assert isinstance(result, DatetimeIndex) + assert result.tz is None + + # same tz results in DatetimeIndex + result = Index( + [ + Timestamp("2011-01-01 10:00", tz="Asia/Tokyo"), + Timestamp("2011-01-02 10:00", tz="Asia/Tokyo"), + ], + name="idx", + ) + exp = DatetimeIndex( + [Timestamp("2011-01-01 10:00"), Timestamp("2011-01-02 10:00")], + tz="Asia/Tokyo", + name="idx", + ) + tm.assert_index_equal(result, exp, exact=True) + assert isinstance(result, DatetimeIndex) + assert result.tz is not None + assert result.tz == exp.tz + + # same tz results in DatetimeIndex (DST) + result = Index( + [ + Timestamp("2011-01-01 10:00", tz="US/Eastern"), + Timestamp("2011-08-01 10:00", tz="US/Eastern"), + ], + name="idx", + ) + exp = DatetimeIndex( + [Timestamp("2011-01-01 10:00"), Timestamp("2011-08-01 10:00")], + tz="US/Eastern", + name="idx", + ) + tm.assert_index_equal(result, exp, exact=True) + assert isinstance(result, DatetimeIndex) + assert result.tz is not None + assert result.tz == exp.tz + + # Different tz results in Index(dtype=object) + result = Index( + [ + Timestamp("2011-01-01 10:00"), + Timestamp("2011-01-02 10:00", tz="US/Eastern"), + ], + name="idx", + ) + exp = Index( + [ + Timestamp("2011-01-01 10:00"), + Timestamp("2011-01-02 10:00", tz="US/Eastern"), + ], + dtype="object", + name="idx", + ) + tm.assert_index_equal(result, exp, exact=True) + assert not isinstance(result, DatetimeIndex) + + result = Index( + [ + Timestamp("2011-01-01 10:00", tz="Asia/Tokyo"), + Timestamp("2011-01-02 10:00", tz="US/Eastern"), + ], + name="idx", + ) + exp = Index( + [ + Timestamp("2011-01-01 10:00", tz="Asia/Tokyo"), + Timestamp("2011-01-02 10:00", tz="US/Eastern"), + ], + dtype="object", + name="idx", + ) + tm.assert_index_equal(result, exp, exact=True) + assert not isinstance(result, DatetimeIndex) + + msg = "DatetimeIndex has mixed timezones" + msg_depr = "parsing datetimes with mixed time zones will raise an error" + with pytest.raises(TypeError, match=msg): + with tm.assert_produces_warning(FutureWarning, match=msg_depr): + DatetimeIndex(["2013-11-02 22:00-05:00", "2013-11-03 22:00-06:00"]) + + # length = 1 + result = Index([Timestamp("2011-01-01")], name="idx") + exp = DatetimeIndex([Timestamp("2011-01-01")], name="idx") + tm.assert_index_equal(result, exp, exact=True) + assert isinstance(result, DatetimeIndex) + assert result.tz is None + + # length = 1 with tz + result = Index([Timestamp("2011-01-01 10:00", tz="Asia/Tokyo")], name="idx") + exp = DatetimeIndex( + [Timestamp("2011-01-01 10:00")], tz="Asia/Tokyo", name="idx" + ) + tm.assert_index_equal(result, exp, exact=True) + assert isinstance(result, DatetimeIndex) + assert result.tz is not None + assert result.tz == exp.tz + + def test_construction_index_with_mixed_timezones_with_NaT(self): + # see gh-11488 + result = Index( + [pd.NaT, Timestamp("2011-01-01"), pd.NaT, Timestamp("2011-01-02")], + name="idx", + ) + exp = DatetimeIndex( + [pd.NaT, Timestamp("2011-01-01"), pd.NaT, Timestamp("2011-01-02")], + name="idx", + ) + tm.assert_index_equal(result, exp, exact=True) + assert isinstance(result, DatetimeIndex) + assert result.tz is None + + # Same tz results in DatetimeIndex + result = Index( + [ + pd.NaT, + Timestamp("2011-01-01 10:00", tz="Asia/Tokyo"), + pd.NaT, + Timestamp("2011-01-02 10:00", tz="Asia/Tokyo"), + ], + name="idx", + ) + exp = DatetimeIndex( + [ + pd.NaT, + Timestamp("2011-01-01 10:00"), + pd.NaT, + Timestamp("2011-01-02 10:00"), + ], + tz="Asia/Tokyo", + name="idx", + ) + tm.assert_index_equal(result, exp, exact=True) + assert isinstance(result, DatetimeIndex) + assert result.tz is not None + assert result.tz == exp.tz + + # same tz results in DatetimeIndex (DST) + result = Index( + [ + Timestamp("2011-01-01 10:00", tz="US/Eastern"), + pd.NaT, + Timestamp("2011-08-01 10:00", tz="US/Eastern"), + ], + name="idx", + ) + exp = DatetimeIndex( + [Timestamp("2011-01-01 10:00"), pd.NaT, Timestamp("2011-08-01 10:00")], + tz="US/Eastern", + name="idx", + ) + tm.assert_index_equal(result, exp, exact=True) + assert isinstance(result, DatetimeIndex) + assert result.tz is not None + assert result.tz == exp.tz + + # different tz results in Index(dtype=object) + result = Index( + [ + pd.NaT, + Timestamp("2011-01-01 10:00"), + pd.NaT, + Timestamp("2011-01-02 10:00", tz="US/Eastern"), + ], + name="idx", + ) + exp = Index( + [ + pd.NaT, + Timestamp("2011-01-01 10:00"), + pd.NaT, + Timestamp("2011-01-02 10:00", tz="US/Eastern"), + ], + dtype="object", + name="idx", + ) + tm.assert_index_equal(result, exp, exact=True) + assert not isinstance(result, DatetimeIndex) + + result = Index( + [ + pd.NaT, + Timestamp("2011-01-01 10:00", tz="Asia/Tokyo"), + pd.NaT, + Timestamp("2011-01-02 10:00", tz="US/Eastern"), + ], + name="idx", + ) + exp = Index( + [ + pd.NaT, + Timestamp("2011-01-01 10:00", tz="Asia/Tokyo"), + pd.NaT, + Timestamp("2011-01-02 10:00", tz="US/Eastern"), + ], + dtype="object", + name="idx", + ) + tm.assert_index_equal(result, exp, exact=True) + assert not isinstance(result, DatetimeIndex) + + # all NaT + result = Index([pd.NaT, pd.NaT], name="idx") + exp = DatetimeIndex([pd.NaT, pd.NaT], name="idx") + tm.assert_index_equal(result, exp, exact=True) + assert isinstance(result, DatetimeIndex) + assert result.tz is None + + def test_construction_dti_with_mixed_timezones(self): + # GH 11488 (not changed, added explicit tests) + + # no tz results in DatetimeIndex + result = DatetimeIndex( + [Timestamp("2011-01-01"), Timestamp("2011-01-02")], name="idx" + ) + exp = DatetimeIndex( + [Timestamp("2011-01-01"), Timestamp("2011-01-02")], name="idx" + ) + tm.assert_index_equal(result, exp, exact=True) + assert isinstance(result, DatetimeIndex) + + # same tz results in DatetimeIndex + result = DatetimeIndex( + [ + Timestamp("2011-01-01 10:00", tz="Asia/Tokyo"), + Timestamp("2011-01-02 10:00", tz="Asia/Tokyo"), + ], + name="idx", + ) + exp = DatetimeIndex( + [Timestamp("2011-01-01 10:00"), Timestamp("2011-01-02 10:00")], + tz="Asia/Tokyo", + name="idx", + ) + tm.assert_index_equal(result, exp, exact=True) + assert isinstance(result, DatetimeIndex) + + # same tz results in DatetimeIndex (DST) + result = DatetimeIndex( + [ + Timestamp("2011-01-01 10:00", tz="US/Eastern"), + Timestamp("2011-08-01 10:00", tz="US/Eastern"), + ], + name="idx", + ) + exp = DatetimeIndex( + [Timestamp("2011-01-01 10:00"), Timestamp("2011-08-01 10:00")], + tz="US/Eastern", + name="idx", + ) + tm.assert_index_equal(result, exp, exact=True) + assert isinstance(result, DatetimeIndex) + + # tz mismatch affecting to tz-aware raises TypeError/ValueError + + msg = "cannot be converted to datetime64" + with pytest.raises(ValueError, match=msg): + DatetimeIndex( + [ + Timestamp("2011-01-01 10:00", tz="Asia/Tokyo"), + Timestamp("2011-01-02 10:00", tz="US/Eastern"), + ], + name="idx", + ) + + # pre-2.0 this raised bc of awareness mismatch. in 2.0 with a tz# + # specified we behave as if this was called pointwise, so + # the naive Timestamp is treated as a wall time. + dti = DatetimeIndex( + [ + Timestamp("2011-01-01 10:00"), + Timestamp("2011-01-02 10:00", tz="US/Eastern"), + ], + tz="Asia/Tokyo", + name="idx", + ) + expected = DatetimeIndex( + [ + Timestamp("2011-01-01 10:00", tz="Asia/Tokyo"), + Timestamp("2011-01-02 10:00", tz="US/Eastern").tz_convert("Asia/Tokyo"), + ], + tz="Asia/Tokyo", + name="idx", + ) + tm.assert_index_equal(dti, expected) + + # pre-2.0 mixed-tz scalars raised even if a tz/dtype was specified. + # as of 2.0 we successfully return the requested tz/dtype + dti = DatetimeIndex( + [ + Timestamp("2011-01-01 10:00", tz="Asia/Tokyo"), + Timestamp("2011-01-02 10:00", tz="US/Eastern"), + ], + tz="US/Eastern", + name="idx", + ) + expected = DatetimeIndex( + [ + Timestamp("2011-01-01 10:00", tz="Asia/Tokyo").tz_convert("US/Eastern"), + Timestamp("2011-01-02 10:00", tz="US/Eastern"), + ], + tz="US/Eastern", + name="idx", + ) + tm.assert_index_equal(dti, expected) + + # same thing but pass dtype instead of tz + dti = DatetimeIndex( + [ + Timestamp("2011-01-01 10:00", tz="Asia/Tokyo"), + Timestamp("2011-01-02 10:00", tz="US/Eastern"), + ], + dtype="M8[ns, US/Eastern]", + name="idx", + ) + tm.assert_index_equal(dti, expected) + + def test_construction_base_constructor(self): + arr = [Timestamp("2011-01-01"), pd.NaT, Timestamp("2011-01-03")] + tm.assert_index_equal(Index(arr), DatetimeIndex(arr)) + tm.assert_index_equal(Index(np.array(arr)), DatetimeIndex(np.array(arr))) + + arr = [np.nan, pd.NaT, Timestamp("2011-01-03")] + tm.assert_index_equal(Index(arr), DatetimeIndex(arr)) + tm.assert_index_equal(Index(np.array(arr)), DatetimeIndex(np.array(arr))) + + def test_construction_outofbounds(self): + # GH 13663 + dates = [ + datetime(3000, 1, 1), + datetime(4000, 1, 1), + datetime(5000, 1, 1), + datetime(6000, 1, 1), + ] + exp = Index(dates, dtype=object) + # coerces to object + tm.assert_index_equal(Index(dates), exp) + + msg = "^Out of bounds nanosecond timestamp: 3000-01-01 00:00:00, at position 0$" + with pytest.raises(OutOfBoundsDatetime, match=msg): + # can't create DatetimeIndex + DatetimeIndex(dates) + + @pytest.mark.parametrize("data", [["1400-01-01"], [datetime(1400, 1, 1)]]) + def test_dti_date_out_of_range(self, data): + # GH#1475 + msg = ( + "^Out of bounds nanosecond timestamp: " + "1400-01-01( 00:00:00)?, at position 0$" + ) + with pytest.raises(OutOfBoundsDatetime, match=msg): + DatetimeIndex(data) + + def test_construction_with_ndarray(self): + # GH 5152 + dates = [datetime(2013, 10, 7), datetime(2013, 10, 8), datetime(2013, 10, 9)] + data = DatetimeIndex(dates, freq=offsets.BDay()).values + result = DatetimeIndex(data, freq=offsets.BDay()) + expected = DatetimeIndex(["2013-10-07", "2013-10-08", "2013-10-09"], freq="B") + tm.assert_index_equal(result, expected) + + def test_integer_values_and_tz_interpreted_as_utc(self): + # GH-24559 + val = np.datetime64("2000-01-01 00:00:00", "ns") + values = np.array([val.view("i8")]) + + result = DatetimeIndex(values).tz_localize("US/Central") + + expected = DatetimeIndex(["2000-01-01T00:00:00"], dtype="M8[ns, US/Central]") + tm.assert_index_equal(result, expected) + + # but UTC is *not* deprecated. + with tm.assert_produces_warning(None): + result = DatetimeIndex(values, tz="UTC") + expected = DatetimeIndex(["2000-01-01T00:00:00"], dtype="M8[ns, UTC]") + tm.assert_index_equal(result, expected) + + def test_constructor_coverage(self): + msg = r"DatetimeIndex\(\.\.\.\) must be called with a collection" + with pytest.raises(TypeError, match=msg): + DatetimeIndex("1/1/2000") + + # generator expression + gen = (datetime(2000, 1, 1) + timedelta(i) for i in range(10)) + result = DatetimeIndex(gen) + expected = DatetimeIndex( + [datetime(2000, 1, 1) + timedelta(i) for i in range(10)] + ) + tm.assert_index_equal(result, expected) + + # NumPy string array + strings = np.array(["2000-01-01", "2000-01-02", "2000-01-03"]) + result = DatetimeIndex(strings) + expected = DatetimeIndex(strings.astype("O")) + tm.assert_index_equal(result, expected) + + from_ints = DatetimeIndex(expected.asi8) + tm.assert_index_equal(from_ints, expected) + + # string with NaT + strings = np.array(["2000-01-01", "2000-01-02", "NaT"]) + result = DatetimeIndex(strings) + expected = DatetimeIndex(strings.astype("O")) + tm.assert_index_equal(result, expected) + + from_ints = DatetimeIndex(expected.asi8) + tm.assert_index_equal(from_ints, expected) + + # non-conforming + msg = ( + "Inferred frequency None from passed values does not conform " + "to passed frequency D" + ) + with pytest.raises(ValueError, match=msg): + DatetimeIndex(["2000-01-01", "2000-01-02", "2000-01-04"], freq="D") + + @pytest.mark.parametrize("freq", ["YS", "W-SUN"]) + def test_constructor_datetime64_tzformat(self, freq): + # see GH#6572: ISO 8601 format results in stdlib timezone object + idx = date_range( + "2013-01-01T00:00:00-05:00", "2016-01-01T23:59:59-05:00", freq=freq + ) + expected = date_range( + "2013-01-01T00:00:00", + "2016-01-01T23:59:59", + freq=freq, + tz=timezone(timedelta(minutes=-300)), + ) + tm.assert_index_equal(idx, expected) + # Unable to use `US/Eastern` because of DST + expected_i8 = date_range( + "2013-01-01T00:00:00", "2016-01-01T23:59:59", freq=freq, tz="America/Lima" + ) + tm.assert_numpy_array_equal(idx.asi8, expected_i8.asi8) + + idx = date_range( + "2013-01-01T00:00:00+09:00", "2016-01-01T23:59:59+09:00", freq=freq + ) + expected = date_range( + "2013-01-01T00:00:00", + "2016-01-01T23:59:59", + freq=freq, + tz=timezone(timedelta(minutes=540)), + ) + tm.assert_index_equal(idx, expected) + expected_i8 = date_range( + "2013-01-01T00:00:00", "2016-01-01T23:59:59", freq=freq, tz="Asia/Tokyo" + ) + tm.assert_numpy_array_equal(idx.asi8, expected_i8.asi8) + + # Non ISO 8601 format results in dateutil.tz.tzoffset + idx = date_range("2013/1/1 0:00:00-5:00", "2016/1/1 23:59:59-5:00", freq=freq) + expected = date_range( + "2013-01-01T00:00:00", + "2016-01-01T23:59:59", + freq=freq, + tz=timezone(timedelta(minutes=-300)), + ) + tm.assert_index_equal(idx, expected) + # Unable to use `US/Eastern` because of DST + expected_i8 = date_range( + "2013-01-01T00:00:00", "2016-01-01T23:59:59", freq=freq, tz="America/Lima" + ) + tm.assert_numpy_array_equal(idx.asi8, expected_i8.asi8) + + idx = date_range("2013/1/1 0:00:00+9:00", "2016/1/1 23:59:59+09:00", freq=freq) + expected = date_range( + "2013-01-01T00:00:00", + "2016-01-01T23:59:59", + freq=freq, + tz=timezone(timedelta(minutes=540)), + ) + tm.assert_index_equal(idx, expected) + expected_i8 = date_range( + "2013-01-01T00:00:00", "2016-01-01T23:59:59", freq=freq, tz="Asia/Tokyo" + ) + tm.assert_numpy_array_equal(idx.asi8, expected_i8.asi8) + + def test_constructor_dtype(self): + # passing a dtype with a tz should localize + idx = DatetimeIndex( + ["2013-01-01", "2013-01-02"], dtype="datetime64[ns, US/Eastern]" + ) + expected = ( + DatetimeIndex(["2013-01-01", "2013-01-02"]) + .as_unit("ns") + .tz_localize("US/Eastern") + ) + tm.assert_index_equal(idx, expected) + + idx = DatetimeIndex(["2013-01-01", "2013-01-02"], tz="US/Eastern").as_unit("ns") + tm.assert_index_equal(idx, expected) + + def test_constructor_dtype_tz_mismatch_raises(self): + # if we already have a tz and its not the same, then raise + idx = DatetimeIndex( + ["2013-01-01", "2013-01-02"], dtype="datetime64[ns, US/Eastern]" + ) + + msg = ( + "cannot supply both a tz and a timezone-naive dtype " + r"\(i\.e\. datetime64\[ns\]\)" + ) + with pytest.raises(ValueError, match=msg): + DatetimeIndex(idx, dtype="datetime64[ns]") + + # this is effectively trying to convert tz's + msg = "data is already tz-aware US/Eastern, unable to set specified tz: CET" + with pytest.raises(TypeError, match=msg): + DatetimeIndex(idx, dtype="datetime64[ns, CET]") + msg = "cannot supply both a tz and a dtype with a tz" + with pytest.raises(ValueError, match=msg): + DatetimeIndex(idx, tz="CET", dtype="datetime64[ns, US/Eastern]") + + result = DatetimeIndex(idx, dtype="datetime64[ns, US/Eastern]") + tm.assert_index_equal(idx, result) + + @pytest.mark.parametrize("dtype", [object, np.int32, np.int64]) + def test_constructor_invalid_dtype_raises(self, dtype): + # GH 23986 + msg = "Unexpected value for 'dtype'" + with pytest.raises(ValueError, match=msg): + DatetimeIndex([1, 2], dtype=dtype) + + def test_000constructor_resolution(self): + # 2252 + t1 = Timestamp((1352934390 * 1000000000) + 1000000 + 1000 + 1) + idx = DatetimeIndex([t1]) + + assert idx.nanosecond[0] == t1.nanosecond + + def test_disallow_setting_tz(self): + # GH 3746 + dti = DatetimeIndex(["2010"], tz="UTC") + msg = "Cannot directly set timezone" + with pytest.raises(AttributeError, match=msg): + dti.tz = pytz.timezone("US/Pacific") + + @pytest.mark.parametrize( + "tz", + [ + None, + "America/Los_Angeles", + pytz.timezone("America/Los_Angeles"), + Timestamp("2000", tz="America/Los_Angeles").tz, + ], + ) + def test_constructor_start_end_with_tz(self, tz): + # GH 18595 + start = Timestamp("2013-01-01 06:00:00", tz="America/Los_Angeles") + end = Timestamp("2013-01-02 06:00:00", tz="America/Los_Angeles") + result = date_range(freq="D", start=start, end=end, tz=tz) + expected = DatetimeIndex( + ["2013-01-01 06:00:00", "2013-01-02 06:00:00"], + dtype="M8[ns, America/Los_Angeles]", + freq="D", + ) + tm.assert_index_equal(result, expected) + # Especially assert that the timezone is consistent for pytz + assert pytz.timezone("America/Los_Angeles") is result.tz + + @pytest.mark.parametrize("tz", ["US/Pacific", "US/Eastern", "Asia/Tokyo"]) + def test_constructor_with_non_normalized_pytz(self, tz): + # GH 18595 + non_norm_tz = Timestamp("2010", tz=tz).tz + result = DatetimeIndex(["2010"], tz=non_norm_tz) + assert pytz.timezone(tz) is result.tz + + def test_constructor_timestamp_near_dst(self): + # GH 20854 + ts = [ + Timestamp("2016-10-30 03:00:00+0300", tz="Europe/Helsinki"), + Timestamp("2016-10-30 03:00:00+0200", tz="Europe/Helsinki"), + ] + result = DatetimeIndex(ts) + expected = DatetimeIndex([ts[0].to_pydatetime(), ts[1].to_pydatetime()]) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("klass", [Index, DatetimeIndex]) + @pytest.mark.parametrize("box", [np.array, partial(np.array, dtype=object), list]) + @pytest.mark.parametrize( + "tz, dtype", + [("US/Pacific", "datetime64[ns, US/Pacific]"), (None, "datetime64[ns]")], + ) + def test_constructor_with_int_tz(self, klass, box, tz, dtype): + # GH 20997, 20964 + ts = Timestamp("2018-01-01", tz=tz).as_unit("ns") + result = klass(box([ts._value]), dtype=dtype) + expected = klass([ts]) + assert result == expected + + def test_construction_int_rountrip(self, tz_naive_fixture): + # GH 12619, GH#24559 + tz = tz_naive_fixture + + result = 1293858000000000000 + expected = DatetimeIndex([result], tz=tz).asi8[0] + assert result == expected + + def test_construction_from_replaced_timestamps_with_dst(self): + # GH 18785 + index = date_range( + Timestamp(2000, 12, 31), + Timestamp(2005, 12, 31), + freq="YE-DEC", + tz="Australia/Melbourne", + ) + result = DatetimeIndex([x.replace(month=6, day=1) for x in index]) + expected = DatetimeIndex( + [ + "2000-06-01 00:00:00", + "2001-06-01 00:00:00", + "2002-06-01 00:00:00", + "2003-06-01 00:00:00", + "2004-06-01 00:00:00", + "2005-06-01 00:00:00", + ], + tz="Australia/Melbourne", + ) + tm.assert_index_equal(result, expected) + + def test_construction_with_tz_and_tz_aware_dti(self): + # GH 23579 + dti = date_range("2016-01-01", periods=3, tz="US/Central") + msg = "data is already tz-aware US/Central, unable to set specified tz" + with pytest.raises(TypeError, match=msg): + DatetimeIndex(dti, tz="Asia/Tokyo") + + def test_construction_with_nat_and_tzlocal(self): + tz = dateutil.tz.tzlocal() + result = DatetimeIndex(["2018", "NaT"], tz=tz) + expected = DatetimeIndex([Timestamp("2018", tz=tz), pd.NaT]) + tm.assert_index_equal(result, expected) + + def test_constructor_with_ambiguous_keyword_arg(self): + # GH 35297 + + expected = DatetimeIndex( + ["2020-11-01 01:00:00", "2020-11-02 01:00:00"], + dtype="datetime64[ns, America/New_York]", + freq="D", + ambiguous=False, + ) + + # ambiguous keyword in start + timezone = "America/New_York" + start = Timestamp(year=2020, month=11, day=1, hour=1).tz_localize( + timezone, ambiguous=False + ) + result = date_range(start=start, periods=2, ambiguous=False) + tm.assert_index_equal(result, expected) + + # ambiguous keyword in end + timezone = "America/New_York" + end = Timestamp(year=2020, month=11, day=2, hour=1).tz_localize( + timezone, ambiguous=False + ) + result = date_range(end=end, periods=2, ambiguous=False) + tm.assert_index_equal(result, expected) + + def test_constructor_with_nonexistent_keyword_arg(self, warsaw): + # GH 35297 + timezone = warsaw + + # nonexistent keyword in start + start = Timestamp("2015-03-29 02:30:00").tz_localize( + timezone, nonexistent="shift_forward" + ) + result = date_range(start=start, periods=2, freq="h") + expected = DatetimeIndex( + [ + Timestamp("2015-03-29 03:00:00+02:00", tz=timezone), + Timestamp("2015-03-29 04:00:00+02:00", tz=timezone), + ] + ) + + tm.assert_index_equal(result, expected) + + # nonexistent keyword in end + end = start + result = date_range(end=end, periods=2, freq="h") + expected = DatetimeIndex( + [ + Timestamp("2015-03-29 01:00:00+01:00", tz=timezone), + Timestamp("2015-03-29 03:00:00+02:00", tz=timezone), + ] + ) + + tm.assert_index_equal(result, expected) + + def test_constructor_no_precision_raises(self): + # GH-24753, GH-24739 + + msg = "with no precision is not allowed" + with pytest.raises(ValueError, match=msg): + DatetimeIndex(["2000"], dtype="datetime64") + + msg = "The 'datetime64' dtype has no unit. Please pass in" + with pytest.raises(ValueError, match=msg): + Index(["2000"], dtype="datetime64") + + def test_constructor_wrong_precision_raises(self): + dti = DatetimeIndex(["2000"], dtype="datetime64[us]") + assert dti.dtype == "M8[us]" + assert dti[0] == Timestamp(2000, 1, 1) + + def test_index_constructor_with_numpy_object_array_and_timestamp_tz_with_nan(self): + # GH 27011 + result = Index(np.array([Timestamp("2019", tz="UTC"), np.nan], dtype=object)) + expected = DatetimeIndex([Timestamp("2019", tz="UTC"), pd.NaT]) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("tz", [pytz.timezone("US/Eastern"), gettz("US/Eastern")]) + def test_dti_from_tzaware_datetime(self, tz): + d = [datetime(2012, 8, 19, tzinfo=tz)] + + index = DatetimeIndex(d) + assert timezones.tz_compare(index.tz, tz) + + @pytest.mark.parametrize("tzstr", ["US/Eastern", "dateutil/US/Eastern"]) + def test_dti_tz_constructors(self, tzstr): + """Test different DatetimeIndex constructions with timezone + Follow-up of GH#4229 + """ + arr = ["11/10/2005 08:00:00", "11/10/2005 09:00:00"] + + idx1 = to_datetime(arr).tz_localize(tzstr) + idx2 = date_range(start="2005-11-10 08:00:00", freq="h", periods=2, tz=tzstr) + idx2 = idx2._with_freq(None) # the others all have freq=None + idx3 = DatetimeIndex(arr, tz=tzstr) + idx4 = DatetimeIndex(np.array(arr), tz=tzstr) + + for other in [idx2, idx3, idx4]: + tm.assert_index_equal(idx1, other) + + def test_dti_construction_idempotent(self, unit): + rng = date_range( + "03/12/2012 00:00", periods=10, freq="W-FRI", tz="US/Eastern", unit=unit + ) + rng2 = DatetimeIndex(data=rng, tz="US/Eastern") + tm.assert_index_equal(rng, rng2) + + @pytest.mark.parametrize("prefix", ["", "dateutil/"]) + def test_dti_constructor_static_tzinfo(self, prefix): + # it works! + index = DatetimeIndex([datetime(2012, 1, 1)], tz=prefix + "EST") + index.hour + index[0] + + @pytest.mark.parametrize("tzstr", ["US/Eastern", "dateutil/US/Eastern"]) + def test_dti_convert_datetime_list(self, tzstr): + dr = date_range("2012-06-02", periods=10, tz=tzstr, name="foo") + dr2 = DatetimeIndex(list(dr), name="foo", freq="D") + tm.assert_index_equal(dr, dr2) + + @pytest.mark.parametrize( + "tz", + [ + pytz.timezone("US/Eastern"), + gettz("US/Eastern"), + ], + ) + @pytest.mark.parametrize("use_str", [True, False]) + @pytest.mark.parametrize("box_cls", [Timestamp, DatetimeIndex]) + def test_dti_ambiguous_matches_timestamp(self, tz, use_str, box_cls, request): + # GH#47471 check that we get the same raising behavior in the DTI + # constructor and Timestamp constructor + dtstr = "2013-11-03 01:59:59.999999" + item = dtstr + if not use_str: + item = Timestamp(dtstr).to_pydatetime() + if box_cls is not Timestamp: + item = [item] + + if not use_str and isinstance(tz, dateutil.tz.tzfile): + # FIXME: The Timestamp constructor here behaves differently than all + # the other cases bc with dateutil/zoneinfo tzinfos we implicitly + # get fold=0. Having this raise is not important, but having the + # behavior be consistent across cases is. + mark = pytest.mark.xfail(reason="We implicitly get fold=0.") + request.applymarker(mark) + + with pytest.raises(pytz.AmbiguousTimeError, match=dtstr): + box_cls(item, tz=tz) + + @pytest.mark.parametrize("tz", [None, "UTC", "US/Pacific"]) + def test_dti_constructor_with_non_nano_dtype(self, tz): + # GH#55756, GH#54620 + ts = Timestamp("2999-01-01") + dtype = "M8[us]" + if tz is not None: + dtype = f"M8[us, {tz}]" + vals = [ts, "2999-01-02 03:04:05.678910", 2500] + result = DatetimeIndex(vals, dtype=dtype) + # The 2500 is interpreted as microseconds, consistent with what + # we would get if we created DatetimeIndexes from vals[:2] and vals[2:] + # and concated the results. + pointwise = [ + vals[0].tz_localize(tz), + Timestamp(vals[1], tz=tz), + to_datetime(vals[2], unit="us", utc=True).tz_convert(tz), + ] + exp_vals = [x.as_unit("us").asm8 for x in pointwise] + exp_arr = np.array(exp_vals, dtype="M8[us]") + expected = DatetimeIndex(exp_arr, dtype="M8[us]") + if tz is not None: + expected = expected.tz_localize("UTC").tz_convert(tz) + tm.assert_index_equal(result, expected) + + result2 = DatetimeIndex(np.array(vals, dtype=object), dtype=dtype) + tm.assert_index_equal(result2, expected) + + def test_dti_constructor_with_non_nano_now_today(self): + # GH#55756 + now = Timestamp.now() + today = Timestamp.today() + result = DatetimeIndex(["now", "today"], dtype="M8[s]") + assert result.dtype == "M8[s]" + + # result may not exactly match [now, today] so we'll test it up to a tolerance. + # (it *may* match exactly due to rounding) + tolerance = pd.Timedelta(microseconds=1) + + diff0 = result[0] - now.as_unit("s") + assert diff0 >= pd.Timedelta(0) + assert diff0 < tolerance + + diff1 = result[1] - today.as_unit("s") + assert diff1 >= pd.Timedelta(0) + assert diff1 < tolerance + + def test_dti_constructor_object_float_matches_float_dtype(self): + # GH#55780 + arr = np.array([0, np.nan], dtype=np.float64) + arr2 = arr.astype(object) + + dti1 = DatetimeIndex(arr, tz="CET") + dti2 = DatetimeIndex(arr2, tz="CET") + tm.assert_index_equal(dti1, dti2) + + @pytest.mark.parametrize("dtype", ["M8[us]", "M8[us, US/Pacific]"]) + def test_dti_constructor_with_dtype_object_int_matches_int_dtype(self, dtype): + # Going through the object path should match the non-object path + + vals1 = np.arange(5, dtype="i8") * 1000 + vals1[0] = pd.NaT.value + + vals2 = vals1.astype(np.float64) + vals2[0] = np.nan + + vals3 = vals1.astype(object) + # change lib.infer_dtype(vals3) from "integer" so we go through + # array_to_datetime in _sequence_to_dt64 + vals3[0] = pd.NaT + + vals4 = vals2.astype(object) + + res1 = DatetimeIndex(vals1, dtype=dtype) + res2 = DatetimeIndex(vals2, dtype=dtype) + res3 = DatetimeIndex(vals3, dtype=dtype) + res4 = DatetimeIndex(vals4, dtype=dtype) + + expected = DatetimeIndex(vals1.view("M8[us]")) + if res1.tz is not None: + expected = expected.tz_localize("UTC").tz_convert(res1.tz) + tm.assert_index_equal(res1, expected) + tm.assert_index_equal(res2, expected) + tm.assert_index_equal(res3, expected) + tm.assert_index_equal(res4, expected) + + +class TestTimeSeries: + def test_dti_constructor_preserve_dti_freq(self): + rng = date_range("1/1/2000", "1/2/2000", freq="5min") + + rng2 = DatetimeIndex(rng) + assert rng.freq == rng2.freq + + def test_explicit_none_freq(self): + # Explicitly passing freq=None is respected + rng = date_range("1/1/2000", "1/2/2000", freq="5min") + + result = DatetimeIndex(rng, freq=None) + assert result.freq is None + + result = DatetimeIndex(rng._data, freq=None) + assert result.freq is None + + def test_dti_constructor_small_int(self, any_int_numpy_dtype): + # see gh-13721 + exp = DatetimeIndex( + [ + "1970-01-01 00:00:00.00000000", + "1970-01-01 00:00:00.00000001", + "1970-01-01 00:00:00.00000002", + ] + ) + + arr = np.array([0, 10, 20], dtype=any_int_numpy_dtype) + tm.assert_index_equal(DatetimeIndex(arr), exp) + + def test_ctor_str_intraday(self): + rng = DatetimeIndex(["1-1-2000 00:00:01"]) + assert rng[0].second == 1 + + def test_index_cast_datetime64_other_units(self): + arr = np.arange(0, 100, 10, dtype=np.int64).view("M8[D]") + idx = Index(arr) + + assert (idx.values == astype_overflowsafe(arr, dtype=np.dtype("M8[ns]"))).all() + + def test_constructor_int64_nocopy(self): + # GH#1624 + arr = np.arange(1000, dtype=np.int64) + index = DatetimeIndex(arr) + + arr[50:100] = -1 + assert (index.asi8[50:100] == -1).all() + + arr = np.arange(1000, dtype=np.int64) + index = DatetimeIndex(arr, copy=True) + + arr[50:100] = -1 + assert (index.asi8[50:100] != -1).all() + + @pytest.mark.parametrize( + "freq", + ["ME", "QE", "YE", "D", "B", "bh", "min", "s", "ms", "us", "h", "ns", "C"], + ) + def test_from_freq_recreate_from_data(self, freq): + org = date_range(start="2001/02/01 09:00", freq=freq, periods=1) + idx = DatetimeIndex(org, freq=freq) + tm.assert_index_equal(idx, org) + + org = date_range( + start="2001/02/01 09:00", freq=freq, tz="US/Pacific", periods=1 + ) + idx = DatetimeIndex(org, freq=freq, tz="US/Pacific") + tm.assert_index_equal(idx, org) + + def test_datetimeindex_constructor_misc(self): + arr = ["1/1/2005", "1/2/2005", "Jn 3, 2005", "2005-01-04"] + msg = r"(\(')?Unknown datetime string format(:', 'Jn 3, 2005'\))?" + with pytest.raises(ValueError, match=msg): + DatetimeIndex(arr) + + arr = ["1/1/2005", "1/2/2005", "1/3/2005", "2005-01-04"] + idx1 = DatetimeIndex(arr) + + arr = [datetime(2005, 1, 1), "1/2/2005", "1/3/2005", "2005-01-04"] + idx2 = DatetimeIndex(arr) + + arr = [Timestamp(datetime(2005, 1, 1)), "1/2/2005", "1/3/2005", "2005-01-04"] + idx3 = DatetimeIndex(arr) + + arr = np.array(["1/1/2005", "1/2/2005", "1/3/2005", "2005-01-04"], dtype="O") + idx4 = DatetimeIndex(arr) + + idx5 = DatetimeIndex(["12/05/2007", "25/01/2008"], dayfirst=True) + idx6 = DatetimeIndex( + ["2007/05/12", "2008/01/25"], dayfirst=False, yearfirst=True + ) + tm.assert_index_equal(idx5, idx6) + + for other in [idx2, idx3, idx4]: + assert (idx1.values == other.values).all() + + def test_dti_constructor_object_dtype_dayfirst_yearfirst_with_tz(self): + # GH#55813 + val = "5/10/16" + + dfirst = Timestamp(2016, 10, 5, tz="US/Pacific") + yfirst = Timestamp(2005, 10, 16, tz="US/Pacific") + + result1 = DatetimeIndex([val], tz="US/Pacific", dayfirst=True) + expected1 = DatetimeIndex([dfirst]) + tm.assert_index_equal(result1, expected1) + + result2 = DatetimeIndex([val], tz="US/Pacific", yearfirst=True) + expected2 = DatetimeIndex([yfirst]) + tm.assert_index_equal(result2, expected2) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_date_range.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_date_range.py new file mode 100644 index 0000000000000000000000000000000000000000..d26bee80003e92092722790d9c38225a3b16b035 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_date_range.py @@ -0,0 +1,1721 @@ +""" +test date_range, bdate_range construction from the convenience range functions +""" + +from datetime import ( + datetime, + time, + timedelta, +) +import re + +import numpy as np +import pytest +import pytz +from pytz import timezone + +from pandas._libs.tslibs import timezones +from pandas._libs.tslibs.offsets import ( + BDay, + CDay, + DateOffset, + MonthEnd, + prefix_mapping, +) +from pandas.errors import OutOfBoundsDatetime +import pandas.util._test_decorators as td + +import pandas as pd +from pandas import ( + DataFrame, + DatetimeIndex, + Series, + Timedelta, + Timestamp, + bdate_range, + date_range, + offsets, +) +import pandas._testing as tm +from pandas.core.arrays.datetimes import _generate_range as generate_range +from pandas.tests.indexes.datetimes.test_timezones import ( + FixedOffset, + fixed_off_no_name, +) + +from pandas.tseries.holiday import USFederalHolidayCalendar + +START, END = datetime(2009, 1, 1), datetime(2010, 1, 1) + + +def _get_expected_range( + begin_to_match, + end_to_match, + both_range, + inclusive_endpoints, +): + """Helper to get expected range from a both inclusive range""" + left_match = begin_to_match == both_range[0] + right_match = end_to_match == both_range[-1] + + if inclusive_endpoints == "left" and right_match: + expected_range = both_range[:-1] + elif inclusive_endpoints == "right" and left_match: + expected_range = both_range[1:] + elif inclusive_endpoints == "neither" and left_match and right_match: + expected_range = both_range[1:-1] + elif inclusive_endpoints == "neither" and right_match: + expected_range = both_range[:-1] + elif inclusive_endpoints == "neither" and left_match: + expected_range = both_range[1:] + elif inclusive_endpoints == "both": + expected_range = both_range[:] + else: + expected_range = both_range[:] + + return expected_range + + +class TestTimestampEquivDateRange: + # Older tests in TestTimeSeries constructed their `stamp` objects + # using `date_range` instead of the `Timestamp` constructor. + # TestTimestampEquivDateRange checks that these are equivalent in the + # pertinent cases. + + def test_date_range_timestamp_equiv(self): + rng = date_range("20090415", "20090519", tz="US/Eastern") + stamp = rng[0] + + ts = Timestamp("20090415", tz="US/Eastern") + assert ts == stamp + + def test_date_range_timestamp_equiv_dateutil(self): + rng = date_range("20090415", "20090519", tz="dateutil/US/Eastern") + stamp = rng[0] + + ts = Timestamp("20090415", tz="dateutil/US/Eastern") + assert ts == stamp + + def test_date_range_timestamp_equiv_explicit_pytz(self): + rng = date_range("20090415", "20090519", tz=pytz.timezone("US/Eastern")) + stamp = rng[0] + + ts = Timestamp("20090415", tz=pytz.timezone("US/Eastern")) + assert ts == stamp + + @td.skip_if_windows + def test_date_range_timestamp_equiv_explicit_dateutil(self): + from pandas._libs.tslibs.timezones import dateutil_gettz as gettz + + rng = date_range("20090415", "20090519", tz=gettz("US/Eastern")) + stamp = rng[0] + + ts = Timestamp("20090415", tz=gettz("US/Eastern")) + assert ts == stamp + + def test_date_range_timestamp_equiv_from_datetime_instance(self): + datetime_instance = datetime(2014, 3, 4) + # build a timestamp with a frequency, since then it supports + # addition/subtraction of integers + timestamp_instance = date_range(datetime_instance, periods=1, freq="D")[0] + + ts = Timestamp(datetime_instance) + assert ts == timestamp_instance + + def test_date_range_timestamp_equiv_preserve_frequency(self): + timestamp_instance = date_range("2014-03-05", periods=1, freq="D")[0] + ts = Timestamp("2014-03-05") + + assert timestamp_instance == ts + + +class TestDateRanges: + def test_date_range_name(self): + idx = date_range(start="2000-01-01", periods=1, freq="YE", name="TEST") + assert idx.name == "TEST" + + def test_date_range_invalid_periods(self): + msg = "periods must be a number, got foo" + with pytest.raises(TypeError, match=msg): + date_range(start="1/1/2000", periods="foo", freq="D") + + def test_date_range_fractional_period(self): + msg = "Non-integer 'periods' in pd.date_range, pd.timedelta_range" + with tm.assert_produces_warning(FutureWarning, match=msg): + rng = date_range("1/1/2000", periods=10.5) + exp = date_range("1/1/2000", periods=10) + tm.assert_index_equal(rng, exp) + + @pytest.mark.parametrize( + "freq,freq_depr", + [ + ("2ME", "2M"), + ("2SME", "2SM"), + ("2BQE", "2BQ"), + ("2BYE", "2BY"), + ], + ) + def test_date_range_frequency_M_SM_BQ_BY_deprecated(self, freq, freq_depr): + # GH#52064 + depr_msg = f"'{freq_depr[1:]}' is deprecated and will be removed " + f"in a future version, please use '{freq[1:]}' instead." + + expected = date_range("1/1/2000", periods=4, freq=freq) + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + result = date_range("1/1/2000", periods=4, freq=freq_depr) + tm.assert_index_equal(result, expected) + + def test_date_range_tuple_freq_raises(self): + # GH#34703 + edate = datetime(2000, 1, 1) + with pytest.raises(TypeError, match="pass as a string instead"): + date_range(end=edate, freq=("D", 5), periods=20) + + @pytest.mark.parametrize("freq", ["ns", "us", "ms", "min", "s", "h", "D"]) + def test_date_range_edges(self, freq): + # GH#13672 + td = Timedelta(f"1{freq}") + ts = Timestamp("1970-01-01") + + idx = date_range( + start=ts + td, + end=ts + 4 * td, + freq=freq, + ) + exp = DatetimeIndex( + [ts + n * td for n in range(1, 5)], + dtype="M8[ns]", + freq=freq, + ) + tm.assert_index_equal(idx, exp) + + # start after end + idx = date_range( + start=ts + 4 * td, + end=ts + td, + freq=freq, + ) + exp = DatetimeIndex([], dtype="M8[ns]", freq=freq) + tm.assert_index_equal(idx, exp) + + # start matches end + idx = date_range( + start=ts + td, + end=ts + td, + freq=freq, + ) + exp = DatetimeIndex([ts + td], dtype="M8[ns]", freq=freq) + tm.assert_index_equal(idx, exp) + + def test_date_range_near_implementation_bound(self): + # GH#??? + freq = Timedelta(1) + + with pytest.raises(OutOfBoundsDatetime, match="Cannot generate range with"): + date_range(end=Timestamp.min, periods=2, freq=freq) + + def test_date_range_nat(self): + # GH#11587 + msg = "Neither `start` nor `end` can be NaT" + with pytest.raises(ValueError, match=msg): + date_range(start="2016-01-01", end=pd.NaT, freq="D") + with pytest.raises(ValueError, match=msg): + date_range(start=pd.NaT, end="2016-01-01", freq="D") + + def test_date_range_multiplication_overflow(self): + # GH#24255 + # check that overflows in calculating `addend = periods * stride` + # are caught + with tm.assert_produces_warning(None): + # we should _not_ be seeing a overflow RuntimeWarning + dti = date_range(start="1677-09-22", periods=213503, freq="D") + + assert dti[0] == Timestamp("1677-09-22") + assert len(dti) == 213503 + + msg = "Cannot generate range with" + with pytest.raises(OutOfBoundsDatetime, match=msg): + date_range("1969-05-04", periods=200000000, freq="30000D") + + def test_date_range_unsigned_overflow_handling(self): + # GH#24255 + # case where `addend = periods * stride` overflows int64 bounds + # but not uint64 bounds + dti = date_range(start="1677-09-22", end="2262-04-11", freq="D") + + dti2 = date_range(start=dti[0], periods=len(dti), freq="D") + assert dti2.equals(dti) + + dti3 = date_range(end=dti[-1], periods=len(dti), freq="D") + assert dti3.equals(dti) + + def test_date_range_int64_overflow_non_recoverable(self): + # GH#24255 + # case with start later than 1970-01-01, overflow int64 but not uint64 + msg = "Cannot generate range with" + with pytest.raises(OutOfBoundsDatetime, match=msg): + date_range(start="1970-02-01", periods=106752 * 24, freq="h") + + # case with end before 1970-01-01, overflow int64 but not uint64 + with pytest.raises(OutOfBoundsDatetime, match=msg): + date_range(end="1969-11-14", periods=106752 * 24, freq="h") + + @pytest.mark.slow + @pytest.mark.parametrize( + "s_ts, e_ts", [("2262-02-23", "1969-11-14"), ("1970-02-01", "1677-10-22")] + ) + def test_date_range_int64_overflow_stride_endpoint_different_signs( + self, s_ts, e_ts + ): + # cases where stride * periods overflow int64 and stride/endpoint + # have different signs + start = Timestamp(s_ts) + end = Timestamp(e_ts) + + expected = date_range(start=start, end=end, freq="-1h") + assert expected[0] == start + assert expected[-1] == end + + dti = date_range(end=end, periods=len(expected), freq="-1h") + tm.assert_index_equal(dti, expected) + + def test_date_range_out_of_bounds(self): + # GH#14187 + msg = "Cannot generate range" + with pytest.raises(OutOfBoundsDatetime, match=msg): + date_range("2016-01-01", periods=100000, freq="D") + with pytest.raises(OutOfBoundsDatetime, match=msg): + date_range(end="1763-10-12", periods=100000, freq="D") + + def test_date_range_gen_error(self): + rng = date_range("1/1/2000 00:00", "1/1/2000 00:18", freq="5min") + assert len(rng) == 4 + + def test_date_range_normalize(self): + snap = datetime.today() + n = 50 + + rng = date_range(snap, periods=n, normalize=False, freq="2D") + + offset = timedelta(2) + expected = DatetimeIndex( + [snap + i * offset for i in range(n)], dtype="M8[ns]", freq=offset + ) + + tm.assert_index_equal(rng, expected) + + rng = date_range("1/1/2000 08:15", periods=n, normalize=False, freq="B") + the_time = time(8, 15) + for val in rng: + assert val.time() == the_time + + def test_date_range_ambiguous_arguments(self): + # #2538 + start = datetime(2011, 1, 1, 5, 3, 40) + end = datetime(2011, 1, 1, 8, 9, 40) + + msg = ( + "Of the four parameters: start, end, periods, and " + "freq, exactly three must be specified" + ) + with pytest.raises(ValueError, match=msg): + date_range(start, end, periods=10, freq="s") + + def test_date_range_convenience_periods(self, unit): + # GH 20808 + result = date_range("2018-04-24", "2018-04-27", periods=3, unit=unit) + expected = DatetimeIndex( + ["2018-04-24 00:00:00", "2018-04-25 12:00:00", "2018-04-27 00:00:00"], + dtype=f"M8[{unit}]", + freq=None, + ) + + tm.assert_index_equal(result, expected) + + # Test if spacing remains linear if tz changes to dst in range + result = date_range( + "2018-04-01 01:00:00", + "2018-04-01 04:00:00", + tz="Australia/Sydney", + periods=3, + unit=unit, + ) + expected = DatetimeIndex( + [ + Timestamp("2018-04-01 01:00:00+1100", tz="Australia/Sydney"), + Timestamp("2018-04-01 02:00:00+1000", tz="Australia/Sydney"), + Timestamp("2018-04-01 04:00:00+1000", tz="Australia/Sydney"), + ] + ).as_unit(unit) + tm.assert_index_equal(result, expected) + + def test_date_range_index_comparison(self): + rng = date_range("2011-01-01", periods=3, tz="US/Eastern") + df = Series(rng).to_frame() + arr = np.array([rng.to_list()]).T + arr2 = np.array([rng]).T + + with pytest.raises(ValueError, match="Unable to coerce to Series"): + rng == df + + with pytest.raises(ValueError, match="Unable to coerce to Series"): + df == rng + + expected = DataFrame([True, True, True]) + + results = df == arr2 + tm.assert_frame_equal(results, expected) + + expected = Series([True, True, True], name=0) + + results = df[0] == arr2[:, 0] + tm.assert_series_equal(results, expected) + + expected = np.array( + [[True, False, False], [False, True, False], [False, False, True]] + ) + results = rng == arr + tm.assert_numpy_array_equal(results, expected) + + @pytest.mark.parametrize( + "start,end,result_tz", + [ + ["20180101", "20180103", "US/Eastern"], + [datetime(2018, 1, 1), datetime(2018, 1, 3), "US/Eastern"], + [Timestamp("20180101"), Timestamp("20180103"), "US/Eastern"], + [ + Timestamp("20180101", tz="US/Eastern"), + Timestamp("20180103", tz="US/Eastern"), + "US/Eastern", + ], + [ + Timestamp("20180101", tz="US/Eastern"), + Timestamp("20180103", tz="US/Eastern"), + None, + ], + ], + ) + def test_date_range_linspacing_tz(self, start, end, result_tz): + # GH 20983 + result = date_range(start, end, periods=3, tz=result_tz) + expected = date_range("20180101", periods=3, freq="D", tz="US/Eastern") + tm.assert_index_equal(result, expected) + + def test_date_range_timedelta(self): + start = "2020-01-01" + end = "2020-01-11" + rng1 = date_range(start, end, freq="3D") + rng2 = date_range(start, end, freq=timedelta(days=3)) + tm.assert_index_equal(rng1, rng2) + + def test_range_misspecified(self): + # GH #1095 + msg = ( + "Of the four parameters: start, end, periods, and " + "freq, exactly three must be specified" + ) + + with pytest.raises(ValueError, match=msg): + date_range(start="1/1/2000") + + with pytest.raises(ValueError, match=msg): + date_range(end="1/1/2000") + + with pytest.raises(ValueError, match=msg): + date_range(periods=10) + + with pytest.raises(ValueError, match=msg): + date_range(start="1/1/2000", freq="h") + + with pytest.raises(ValueError, match=msg): + date_range(end="1/1/2000", freq="h") + + with pytest.raises(ValueError, match=msg): + date_range(periods=10, freq="h") + + with pytest.raises(ValueError, match=msg): + date_range() + + def test_compat_replace(self): + # https://github.com/statsmodels/statsmodels/issues/3349 + # replace should take ints/longs for compat + result = date_range(Timestamp("1960-04-01 00:00:00"), periods=76, freq="QS-JAN") + assert len(result) == 76 + + def test_catch_infinite_loop(self): + offset = offsets.DateOffset(minute=5) + # blow up, don't loop forever + msg = "Offset did not increment date" + with pytest.raises(ValueError, match=msg): + date_range(datetime(2011, 11, 11), datetime(2011, 11, 12), freq=offset) + + def test_construct_over_dst(self, unit): + # GH 20854 + pre_dst = Timestamp("2010-11-07 01:00:00").tz_localize( + "US/Pacific", ambiguous=True + ) + pst_dst = Timestamp("2010-11-07 01:00:00").tz_localize( + "US/Pacific", ambiguous=False + ) + expect_data = [ + Timestamp("2010-11-07 00:00:00", tz="US/Pacific"), + pre_dst, + pst_dst, + ] + expected = DatetimeIndex(expect_data, freq="h").as_unit(unit) + result = date_range( + start="2010-11-7", periods=3, freq="h", tz="US/Pacific", unit=unit + ) + tm.assert_index_equal(result, expected) + + def test_construct_with_different_start_end_string_format(self, unit): + # GH 12064 + result = date_range( + "2013-01-01 00:00:00+09:00", + "2013/01/01 02:00:00+09:00", + freq="h", + unit=unit, + ) + expected = DatetimeIndex( + [ + Timestamp("2013-01-01 00:00:00+09:00"), + Timestamp("2013-01-01 01:00:00+09:00"), + Timestamp("2013-01-01 02:00:00+09:00"), + ], + freq="h", + ).as_unit(unit) + tm.assert_index_equal(result, expected) + + def test_error_with_zero_monthends(self): + msg = r"Offset <0 \* MonthEnds> did not increment date" + with pytest.raises(ValueError, match=msg): + date_range("1/1/2000", "1/1/2001", freq=MonthEnd(0)) + + def test_range_bug(self, unit): + # GH #770 + offset = DateOffset(months=3) + result = date_range("2011-1-1", "2012-1-31", freq=offset, unit=unit) + + start = datetime(2011, 1, 1) + expected = DatetimeIndex( + [start + i * offset for i in range(5)], dtype=f"M8[{unit}]", freq=offset + ) + tm.assert_index_equal(result, expected) + + def test_range_tz_pytz(self): + # see gh-2906 + tz = timezone("US/Eastern") + start = tz.localize(datetime(2011, 1, 1)) + end = tz.localize(datetime(2011, 1, 3)) + + dr = date_range(start=start, periods=3) + assert dr.tz.zone == tz.zone + assert dr[0] == start + assert dr[2] == end + + dr = date_range(end=end, periods=3) + assert dr.tz.zone == tz.zone + assert dr[0] == start + assert dr[2] == end + + dr = date_range(start=start, end=end) + assert dr.tz.zone == tz.zone + assert dr[0] == start + assert dr[2] == end + + @pytest.mark.parametrize( + "start, end", + [ + [ + Timestamp(datetime(2014, 3, 6), tz="US/Eastern"), + Timestamp(datetime(2014, 3, 12), tz="US/Eastern"), + ], + [ + Timestamp(datetime(2013, 11, 1), tz="US/Eastern"), + Timestamp(datetime(2013, 11, 6), tz="US/Eastern"), + ], + ], + ) + def test_range_tz_dst_straddle_pytz(self, start, end): + dr = date_range(start, end, freq="D") + assert dr[0] == start + assert dr[-1] == end + assert np.all(dr.hour == 0) + + dr = date_range(start, end, freq="D", tz="US/Eastern") + assert dr[0] == start + assert dr[-1] == end + assert np.all(dr.hour == 0) + + dr = date_range( + start.replace(tzinfo=None), + end.replace(tzinfo=None), + freq="D", + tz="US/Eastern", + ) + assert dr[0] == start + assert dr[-1] == end + assert np.all(dr.hour == 0) + + def test_range_tz_dateutil(self): + # see gh-2906 + + # Use maybe_get_tz to fix filename in tz under dateutil. + from pandas._libs.tslibs.timezones import maybe_get_tz + + tz = lambda x: maybe_get_tz("dateutil/" + x) + + start = datetime(2011, 1, 1, tzinfo=tz("US/Eastern")) + end = datetime(2011, 1, 3, tzinfo=tz("US/Eastern")) + + dr = date_range(start=start, periods=3) + assert dr.tz == tz("US/Eastern") + assert dr[0] == start + assert dr[2] == end + + dr = date_range(end=end, periods=3) + assert dr.tz == tz("US/Eastern") + assert dr[0] == start + assert dr[2] == end + + dr = date_range(start=start, end=end) + assert dr.tz == tz("US/Eastern") + assert dr[0] == start + assert dr[2] == end + + @pytest.mark.parametrize("freq", ["1D", "3D", "2ME", "7W", "3h", "YE"]) + @pytest.mark.parametrize("tz", [None, "US/Eastern"]) + def test_range_closed(self, freq, tz, inclusive_endpoints_fixture): + # GH#12409, GH#12684 + + begin = Timestamp("2011/1/1", tz=tz) + end = Timestamp("2014/1/1", tz=tz) + + result_range = date_range( + begin, end, inclusive=inclusive_endpoints_fixture, freq=freq + ) + both_range = date_range(begin, end, inclusive="both", freq=freq) + expected_range = _get_expected_range( + begin, end, both_range, inclusive_endpoints_fixture + ) + + tm.assert_index_equal(expected_range, result_range) + + @pytest.mark.parametrize("freq", ["1D", "3D", "2ME", "7W", "3h", "YE"]) + def test_range_with_tz_closed_with_tz_aware_start_end( + self, freq, inclusive_endpoints_fixture + ): + begin = Timestamp("2011/1/1") + end = Timestamp("2014/1/1") + begintz = Timestamp("2011/1/1", tz="US/Eastern") + endtz = Timestamp("2014/1/1", tz="US/Eastern") + + result_range = date_range( + begin, + end, + inclusive=inclusive_endpoints_fixture, + freq=freq, + tz="US/Eastern", + ) + both_range = date_range( + begin, end, inclusive="both", freq=freq, tz="US/Eastern" + ) + expected_range = _get_expected_range( + begintz, + endtz, + both_range, + inclusive_endpoints_fixture, + ) + + tm.assert_index_equal(expected_range, result_range) + + def test_range_closed_boundary(self, inclusive_endpoints_fixture): + # GH#11804 + right_boundary = date_range( + "2015-09-12", + "2015-12-01", + freq="QS-MAR", + inclusive=inclusive_endpoints_fixture, + ) + left_boundary = date_range( + "2015-09-01", + "2015-09-12", + freq="QS-MAR", + inclusive=inclusive_endpoints_fixture, + ) + both_boundary = date_range( + "2015-09-01", + "2015-12-01", + freq="QS-MAR", + inclusive=inclusive_endpoints_fixture, + ) + neither_boundary = date_range( + "2015-09-11", + "2015-09-12", + freq="QS-MAR", + inclusive=inclusive_endpoints_fixture, + ) + + expected_right = both_boundary + expected_left = both_boundary + expected_both = both_boundary + + if inclusive_endpoints_fixture == "right": + expected_left = both_boundary[1:] + elif inclusive_endpoints_fixture == "left": + expected_right = both_boundary[:-1] + elif inclusive_endpoints_fixture == "both": + expected_right = both_boundary[1:] + expected_left = both_boundary[:-1] + + expected_neither = both_boundary[1:-1] + + tm.assert_index_equal(right_boundary, expected_right) + tm.assert_index_equal(left_boundary, expected_left) + tm.assert_index_equal(both_boundary, expected_both) + tm.assert_index_equal(neither_boundary, expected_neither) + + def test_date_range_years_only(self, tz_naive_fixture): + tz = tz_naive_fixture + # GH#6961 + rng1 = date_range("2014", "2015", freq="ME", tz=tz) + expected1 = date_range("2014-01-31", "2014-12-31", freq="ME", tz=tz) + tm.assert_index_equal(rng1, expected1) + + rng2 = date_range("2014", "2015", freq="MS", tz=tz) + expected2 = date_range("2014-01-01", "2015-01-01", freq="MS", tz=tz) + tm.assert_index_equal(rng2, expected2) + + rng3 = date_range("2014", "2020", freq="YE", tz=tz) + expected3 = date_range("2014-12-31", "2019-12-31", freq="YE", tz=tz) + tm.assert_index_equal(rng3, expected3) + + rng4 = date_range("2014", "2020", freq="YS", tz=tz) + expected4 = date_range("2014-01-01", "2020-01-01", freq="YS", tz=tz) + tm.assert_index_equal(rng4, expected4) + + def test_freq_divides_end_in_nanos(self): + # GH 10885 + result_1 = date_range("2005-01-12 10:00", "2005-01-12 16:00", freq="345min") + result_2 = date_range("2005-01-13 10:00", "2005-01-13 16:00", freq="345min") + expected_1 = DatetimeIndex( + ["2005-01-12 10:00:00", "2005-01-12 15:45:00"], + dtype="datetime64[ns]", + freq="345min", + tz=None, + ) + expected_2 = DatetimeIndex( + ["2005-01-13 10:00:00", "2005-01-13 15:45:00"], + dtype="datetime64[ns]", + freq="345min", + tz=None, + ) + tm.assert_index_equal(result_1, expected_1) + tm.assert_index_equal(result_2, expected_2) + + def test_cached_range_bug(self): + rng = date_range("2010-09-01 05:00:00", periods=50, freq=DateOffset(hours=6)) + assert len(rng) == 50 + assert rng[0] == datetime(2010, 9, 1, 5) + + def test_timezone_comparison_bug(self): + # smoke test + start = Timestamp("20130220 10:00", tz="US/Eastern") + result = date_range(start, periods=2, tz="US/Eastern") + assert len(result) == 2 + + def test_timezone_comparison_assert(self): + start = Timestamp("20130220 10:00", tz="US/Eastern") + msg = "Inferred time zone not equal to passed time zone" + with pytest.raises(AssertionError, match=msg): + date_range(start, periods=2, tz="Europe/Berlin") + + def test_negative_non_tick_frequency_descending_dates(self, tz_aware_fixture): + # GH 23270 + tz = tz_aware_fixture + result = date_range(start="2011-06-01", end="2011-01-01", freq="-1MS", tz=tz) + expected = date_range(end="2011-06-01", start="2011-01-01", freq="1MS", tz=tz)[ + ::-1 + ] + tm.assert_index_equal(result, expected) + + def test_range_where_start_equal_end(self, inclusive_endpoints_fixture): + # GH 43394 + start = "2021-09-02" + end = "2021-09-02" + result = date_range( + start=start, end=end, freq="D", inclusive=inclusive_endpoints_fixture + ) + + both_range = date_range(start=start, end=end, freq="D", inclusive="both") + if inclusive_endpoints_fixture == "neither": + expected = both_range[1:-1] + elif inclusive_endpoints_fixture in ("left", "right", "both"): + expected = both_range[:] + + tm.assert_index_equal(result, expected) + + def test_freq_dateoffset_with_relateivedelta_nanos(self): + # GH 46877 + freq = DateOffset(hours=10, days=57, nanoseconds=3) + result = date_range(end="1970-01-01 00:00:00", periods=10, freq=freq, name="a") + expected = DatetimeIndex( + [ + "1968-08-02T05:59:59.999999973", + "1968-09-28T15:59:59.999999976", + "1968-11-25T01:59:59.999999979", + "1969-01-21T11:59:59.999999982", + "1969-03-19T21:59:59.999999985", + "1969-05-16T07:59:59.999999988", + "1969-07-12T17:59:59.999999991", + "1969-09-08T03:59:59.999999994", + "1969-11-04T13:59:59.999999997", + "1970-01-01T00:00:00.000000000", + ], + name="a", + ) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "freq,freq_depr", + [ + ("h", "H"), + ("2min", "2T"), + ("1s", "1S"), + ("2ms", "2L"), + ("1us", "1U"), + ("2ns", "2N"), + ], + ) + def test_frequencies_H_T_S_L_U_N_deprecated(self, freq, freq_depr): + # GH#52536 + freq_msg = re.split("[0-9]*", freq, maxsplit=1)[1] + freq_depr_msg = re.split("[0-9]*", freq_depr, maxsplit=1)[1] + msg = ( + f"'{freq_depr_msg}' is deprecated and will be removed in a future version, " + ) + f"please use '{freq_msg}' instead" + + expected = date_range("1/1/2000", periods=2, freq=freq) + with tm.assert_produces_warning(FutureWarning, match=msg): + result = date_range("1/1/2000", periods=2, freq=freq_depr) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "freq,freq_depr", + [ + ("200YE", "200A"), + ("YE", "Y"), + ("2YE-MAY", "2A-MAY"), + ("YE-MAY", "Y-MAY"), + ], + ) + def test_frequencies_A_deprecated_Y_renamed(self, freq, freq_depr): + # GH#9586, GH#54275 + freq_msg = re.split("[0-9]*", freq, maxsplit=1)[1] + freq_depr_msg = re.split("[0-9]*", freq_depr, maxsplit=1)[1] + msg = f"'{freq_depr_msg}' is deprecated and will be removed " + f"in a future version, please use '{freq_msg}' instead." + + expected = date_range("1/1/2000", periods=2, freq=freq) + with tm.assert_produces_warning(FutureWarning, match=msg): + result = date_range("1/1/2000", periods=2, freq=freq_depr) + tm.assert_index_equal(result, expected) + + def test_to_offset_with_lowercase_deprecated_freq(self) -> None: + # https://github.com/pandas-dev/pandas/issues/56847 + msg = ( + "'m' is deprecated and will be removed in a future version, please use " + "'ME' instead." + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + result = date_range("2010-01-01", periods=2, freq="m") + expected = DatetimeIndex(["2010-01-31", "2010-02-28"], freq="ME") + tm.assert_index_equal(result, expected) + + def test_date_range_bday(self): + sdate = datetime(1999, 12, 25) + idx = date_range(start=sdate, freq="1B", periods=20) + assert len(idx) == 20 + assert idx[0] == sdate + 0 * offsets.BDay() + assert idx.freq == "B" + + +class TestDateRangeTZ: + """Tests for date_range with timezones""" + + def test_hongkong_tz_convert(self): + # GH#1673 smoke test + dr = date_range("2012-01-01", "2012-01-10", freq="D", tz="Hongkong") + + # it works! + dr.hour + + @pytest.mark.parametrize("tzstr", ["US/Eastern", "dateutil/US/Eastern"]) + def test_date_range_span_dst_transition(self, tzstr): + # GH#1778 + + # Standard -> Daylight Savings Time + dr = date_range("03/06/2012 00:00", periods=200, freq="W-FRI", tz="US/Eastern") + + assert (dr.hour == 0).all() + + dr = date_range("2012-11-02", periods=10, tz=tzstr) + result = dr.hour + expected = pd.Index([0] * 10, dtype="int32") + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("tzstr", ["US/Eastern", "dateutil/US/Eastern"]) + def test_date_range_timezone_str_argument(self, tzstr): + tz = timezones.maybe_get_tz(tzstr) + result = date_range("1/1/2000", periods=10, tz=tzstr) + expected = date_range("1/1/2000", periods=10, tz=tz) + + tm.assert_index_equal(result, expected) + + def test_date_range_with_fixed_tz(self): + off = FixedOffset(420, "+07:00") + start = datetime(2012, 3, 11, 5, 0, 0, tzinfo=off) + end = datetime(2012, 6, 11, 5, 0, 0, tzinfo=off) + rng = date_range(start=start, end=end) + assert off == rng.tz + + rng2 = date_range(start, periods=len(rng), tz=off) + tm.assert_index_equal(rng, rng2) + + rng3 = date_range("3/11/2012 05:00:00+07:00", "6/11/2012 05:00:00+07:00") + assert (rng.values == rng3.values).all() + + def test_date_range_with_fixedoffset_noname(self): + off = fixed_off_no_name + start = datetime(2012, 3, 11, 5, 0, 0, tzinfo=off) + end = datetime(2012, 6, 11, 5, 0, 0, tzinfo=off) + rng = date_range(start=start, end=end) + assert off == rng.tz + + idx = pd.Index([start, end]) + assert off == idx.tz + + @pytest.mark.parametrize("tzstr", ["US/Eastern", "dateutil/US/Eastern"]) + def test_date_range_with_tz(self, tzstr): + stamp = Timestamp("3/11/2012 05:00", tz=tzstr) + assert stamp.hour == 5 + + rng = date_range("3/11/2012 04:00", periods=10, freq="h", tz=tzstr) + + assert stamp == rng[1] + + @pytest.mark.parametrize("tz", ["Europe/London", "dateutil/Europe/London"]) + def test_date_range_ambiguous_endpoint(self, tz): + # construction with an ambiguous end-point + # GH#11626 + + with pytest.raises(pytz.AmbiguousTimeError, match="Cannot infer dst time"): + date_range( + "2013-10-26 23:00", "2013-10-27 01:00", tz="Europe/London", freq="h" + ) + + times = date_range( + "2013-10-26 23:00", "2013-10-27 01:00", freq="h", tz=tz, ambiguous="infer" + ) + assert times[0] == Timestamp("2013-10-26 23:00", tz=tz) + assert times[-1] == Timestamp("2013-10-27 01:00:00+0000", tz=tz) + + @pytest.mark.parametrize( + "tz, option, expected", + [ + ["US/Pacific", "shift_forward", "2019-03-10 03:00"], + ["dateutil/US/Pacific", "shift_forward", "2019-03-10 03:00"], + ["US/Pacific", "shift_backward", "2019-03-10 01:00"], + ["dateutil/US/Pacific", "shift_backward", "2019-03-10 01:00"], + ["US/Pacific", timedelta(hours=1), "2019-03-10 03:00"], + ], + ) + def test_date_range_nonexistent_endpoint(self, tz, option, expected): + # construction with an nonexistent end-point + + with pytest.raises(pytz.NonExistentTimeError, match="2019-03-10 02:00:00"): + date_range( + "2019-03-10 00:00", "2019-03-10 02:00", tz="US/Pacific", freq="h" + ) + + times = date_range( + "2019-03-10 00:00", "2019-03-10 02:00", freq="h", tz=tz, nonexistent=option + ) + assert times[-1] == Timestamp(expected, tz=tz) + + +class TestGenRangeGeneration: + @pytest.mark.parametrize( + "freqstr,offset", + [ + ("B", BDay()), + ("C", CDay()), + ], + ) + def test_generate(self, freqstr, offset): + rng1 = list(generate_range(START, END, periods=None, offset=offset, unit="ns")) + rng2 = list(generate_range(START, END, periods=None, offset=freqstr, unit="ns")) + assert rng1 == rng2 + + def test_1(self): + rng = list( + generate_range( + start=datetime(2009, 3, 25), + end=None, + periods=2, + offset=BDay(), + unit="ns", + ) + ) + expected = [datetime(2009, 3, 25), datetime(2009, 3, 26)] + assert rng == expected + + def test_2(self): + rng = list( + generate_range( + start=datetime(2008, 1, 1), + end=datetime(2008, 1, 3), + periods=None, + offset=BDay(), + unit="ns", + ) + ) + expected = [datetime(2008, 1, 1), datetime(2008, 1, 2), datetime(2008, 1, 3)] + assert rng == expected + + def test_3(self): + rng = list( + generate_range( + start=datetime(2008, 1, 5), + end=datetime(2008, 1, 6), + periods=None, + offset=BDay(), + unit="ns", + ) + ) + expected = [] + assert rng == expected + + def test_precision_finer_than_offset(self): + # GH#9907 + result1 = date_range( + start="2015-04-15 00:00:03", end="2016-04-22 00:00:00", freq="QE" + ) + result2 = date_range( + start="2015-04-15 00:00:03", end="2015-06-22 00:00:04", freq="W" + ) + expected1_list = [ + "2015-06-30 00:00:03", + "2015-09-30 00:00:03", + "2015-12-31 00:00:03", + "2016-03-31 00:00:03", + ] + expected2_list = [ + "2015-04-19 00:00:03", + "2015-04-26 00:00:03", + "2015-05-03 00:00:03", + "2015-05-10 00:00:03", + "2015-05-17 00:00:03", + "2015-05-24 00:00:03", + "2015-05-31 00:00:03", + "2015-06-07 00:00:03", + "2015-06-14 00:00:03", + "2015-06-21 00:00:03", + ] + expected1 = DatetimeIndex( + expected1_list, dtype="datetime64[ns]", freq="QE-DEC", tz=None + ) + expected2 = DatetimeIndex( + expected2_list, dtype="datetime64[ns]", freq="W-SUN", tz=None + ) + tm.assert_index_equal(result1, expected1) + tm.assert_index_equal(result2, expected2) + + dt1, dt2 = "2017-01-01", "2017-01-01" + tz1, tz2 = "US/Eastern", "Europe/London" + + @pytest.mark.parametrize( + "start,end", + [ + (Timestamp(dt1, tz=tz1), Timestamp(dt2)), + (Timestamp(dt1), Timestamp(dt2, tz=tz2)), + (Timestamp(dt1, tz=tz1), Timestamp(dt2, tz=tz2)), + (Timestamp(dt1, tz=tz2), Timestamp(dt2, tz=tz1)), + ], + ) + def test_mismatching_tz_raises_err(self, start, end): + # issue 18488 + msg = "Start and end cannot both be tz-aware with different timezones" + with pytest.raises(TypeError, match=msg): + date_range(start, end) + with pytest.raises(TypeError, match=msg): + date_range(start, end, freq=BDay()) + + +class TestBusinessDateRange: + def test_constructor(self): + bdate_range(START, END, freq=BDay()) + bdate_range(START, periods=20, freq=BDay()) + bdate_range(end=START, periods=20, freq=BDay()) + + msg = "periods must be a number, got B" + with pytest.raises(TypeError, match=msg): + date_range("2011-1-1", "2012-1-1", "B") + + with pytest.raises(TypeError, match=msg): + bdate_range("2011-1-1", "2012-1-1", "B") + + msg = "freq must be specified for bdate_range; use date_range instead" + with pytest.raises(TypeError, match=msg): + bdate_range(START, END, periods=10, freq=None) + + def test_misc(self): + end = datetime(2009, 5, 13) + dr = bdate_range(end=end, periods=20) + firstDate = end - 19 * BDay() + + assert len(dr) == 20 + assert dr[0] == firstDate + assert dr[-1] == end + + def test_date_parse_failure(self): + badly_formed_date = "2007/100/1" + + msg = "Unknown datetime string format, unable to parse: 2007/100/1" + with pytest.raises(ValueError, match=msg): + Timestamp(badly_formed_date) + + with pytest.raises(ValueError, match=msg): + bdate_range(start=badly_formed_date, periods=10) + + with pytest.raises(ValueError, match=msg): + bdate_range(end=badly_formed_date, periods=10) + + with pytest.raises(ValueError, match=msg): + bdate_range(badly_formed_date, badly_formed_date) + + def test_daterange_bug_456(self): + # GH #456 + rng1 = bdate_range("12/5/2011", "12/5/2011") + rng2 = bdate_range("12/2/2011", "12/5/2011") + assert rng2._data.freq == BDay() + + result = rng1.union(rng2) + assert isinstance(result, DatetimeIndex) + + @pytest.mark.parametrize("inclusive", ["left", "right", "neither", "both"]) + def test_bdays_and_open_boundaries(self, inclusive): + # GH 6673 + start = "2018-07-21" # Saturday + end = "2018-07-29" # Sunday + result = date_range(start, end, freq="B", inclusive=inclusive) + + bday_start = "2018-07-23" # Monday + bday_end = "2018-07-27" # Friday + expected = date_range(bday_start, bday_end, freq="D") + tm.assert_index_equal(result, expected) + # Note: we do _not_ expect the freqs to match here + + def test_bday_near_overflow(self): + # GH#24252 avoid doing unnecessary addition that _would_ overflow + start = Timestamp.max.floor("D").to_pydatetime() + rng = date_range(start, end=None, periods=1, freq="B") + expected = DatetimeIndex([start], freq="B").as_unit("ns") + tm.assert_index_equal(rng, expected) + + def test_bday_overflow_error(self): + # GH#24252 check that we get OutOfBoundsDatetime and not OverflowError + msg = "Out of bounds nanosecond timestamp" + start = Timestamp.max.floor("D").to_pydatetime() + with pytest.raises(OutOfBoundsDatetime, match=msg): + date_range(start, periods=2, freq="B") + + +class TestCustomDateRange: + def test_constructor(self): + bdate_range(START, END, freq=CDay()) + bdate_range(START, periods=20, freq=CDay()) + bdate_range(end=START, periods=20, freq=CDay()) + + msg = "periods must be a number, got C" + with pytest.raises(TypeError, match=msg): + date_range("2011-1-1", "2012-1-1", "C") + + with pytest.raises(TypeError, match=msg): + bdate_range("2011-1-1", "2012-1-1", "C") + + def test_misc(self): + end = datetime(2009, 5, 13) + dr = bdate_range(end=end, periods=20, freq="C") + firstDate = end - 19 * CDay() + + assert len(dr) == 20 + assert dr[0] == firstDate + assert dr[-1] == end + + def test_daterange_bug_456(self): + # GH #456 + rng1 = bdate_range("12/5/2011", "12/5/2011", freq="C") + rng2 = bdate_range("12/2/2011", "12/5/2011", freq="C") + assert rng2._data.freq == CDay() + + result = rng1.union(rng2) + assert isinstance(result, DatetimeIndex) + + def test_cdaterange(self, unit): + result = bdate_range("2013-05-01", periods=3, freq="C", unit=unit) + expected = DatetimeIndex( + ["2013-05-01", "2013-05-02", "2013-05-03"], dtype=f"M8[{unit}]", freq="C" + ) + tm.assert_index_equal(result, expected) + assert result.freq == expected.freq + + def test_cdaterange_weekmask(self, unit): + result = bdate_range( + "2013-05-01", periods=3, freq="C", weekmask="Sun Mon Tue Wed Thu", unit=unit + ) + expected = DatetimeIndex( + ["2013-05-01", "2013-05-02", "2013-05-05"], + dtype=f"M8[{unit}]", + freq=result.freq, + ) + tm.assert_index_equal(result, expected) + assert result.freq == expected.freq + + # raise with non-custom freq + msg = ( + "a custom frequency string is required when holidays or " + "weekmask are passed, got frequency B" + ) + with pytest.raises(ValueError, match=msg): + bdate_range("2013-05-01", periods=3, weekmask="Sun Mon Tue Wed Thu") + + def test_cdaterange_holidays(self, unit): + result = bdate_range( + "2013-05-01", periods=3, freq="C", holidays=["2013-05-01"], unit=unit + ) + expected = DatetimeIndex( + ["2013-05-02", "2013-05-03", "2013-05-06"], + dtype=f"M8[{unit}]", + freq=result.freq, + ) + tm.assert_index_equal(result, expected) + assert result.freq == expected.freq + + # raise with non-custom freq + msg = ( + "a custom frequency string is required when holidays or " + "weekmask are passed, got frequency B" + ) + with pytest.raises(ValueError, match=msg): + bdate_range("2013-05-01", periods=3, holidays=["2013-05-01"]) + + def test_cdaterange_weekmask_and_holidays(self, unit): + result = bdate_range( + "2013-05-01", + periods=3, + freq="C", + weekmask="Sun Mon Tue Wed Thu", + holidays=["2013-05-01"], + unit=unit, + ) + expected = DatetimeIndex( + ["2013-05-02", "2013-05-05", "2013-05-06"], + dtype=f"M8[{unit}]", + freq=result.freq, + ) + tm.assert_index_equal(result, expected) + assert result.freq == expected.freq + + def test_cdaterange_holidays_weekmask_requires_freqstr(self): + # raise with non-custom freq + msg = ( + "a custom frequency string is required when holidays or " + "weekmask are passed, got frequency B" + ) + with pytest.raises(ValueError, match=msg): + bdate_range( + "2013-05-01", + periods=3, + weekmask="Sun Mon Tue Wed Thu", + holidays=["2013-05-01"], + ) + + @pytest.mark.parametrize( + "freq", [freq for freq in prefix_mapping if freq.startswith("C")] + ) + def test_all_custom_freq(self, freq): + # should not raise + bdate_range( + START, END, freq=freq, weekmask="Mon Wed Fri", holidays=["2009-03-14"] + ) + + bad_freq = freq + "FOO" + msg = f"invalid custom frequency string: {bad_freq}" + with pytest.raises(ValueError, match=msg): + bdate_range(START, END, freq=bad_freq) + + @pytest.mark.parametrize( + "start_end", + [ + ("2018-01-01T00:00:01.000Z", "2018-01-03T00:00:01.000Z"), + ("2018-01-01T00:00:00.010Z", "2018-01-03T00:00:00.010Z"), + ("2001-01-01T00:00:00.010Z", "2001-01-03T00:00:00.010Z"), + ], + ) + def test_range_with_millisecond_resolution(self, start_end): + # https://github.com/pandas-dev/pandas/issues/24110 + start, end = start_end + result = date_range(start=start, end=end, periods=2, inclusive="left") + expected = DatetimeIndex([start], dtype="M8[ns, UTC]") + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "start,period,expected", + [ + ("2022-07-23 00:00:00+02:00", 1, ["2022-07-25 00:00:00+02:00"]), + ("2022-07-22 00:00:00+02:00", 1, ["2022-07-22 00:00:00+02:00"]), + ( + "2022-07-22 00:00:00+02:00", + 2, + ["2022-07-22 00:00:00+02:00", "2022-07-25 00:00:00+02:00"], + ), + ], + ) + def test_range_with_timezone_and_custombusinessday(self, start, period, expected): + # GH49441 + result = date_range(start=start, periods=period, freq="C") + expected = DatetimeIndex(expected).as_unit("ns") + tm.assert_index_equal(result, expected) + + +class TestDateRangeNonNano: + def test_date_range_reso_validation(self): + msg = "'unit' must be one of 's', 'ms', 'us', 'ns'" + with pytest.raises(ValueError, match=msg): + date_range("2016-01-01", "2016-03-04", periods=3, unit="h") + + def test_date_range_freq_higher_than_reso(self): + # freq being higher-resolution than reso is a problem + msg = "Use a lower freq or a higher unit instead" + with pytest.raises(ValueError, match=msg): + # # TODO give a more useful or informative message? + date_range("2016-01-01", "2016-01-02", freq="ns", unit="ms") + + def test_date_range_freq_matches_reso(self): + # GH#49106 matching reso is OK + dti = date_range("2016-01-01", "2016-01-01 00:00:01", freq="ms", unit="ms") + rng = np.arange(1_451_606_400_000, 1_451_606_401_001, dtype=np.int64) + expected = DatetimeIndex(rng.view("M8[ms]"), freq="ms") + tm.assert_index_equal(dti, expected) + + dti = date_range("2016-01-01", "2016-01-01 00:00:01", freq="us", unit="us") + rng = np.arange(1_451_606_400_000_000, 1_451_606_401_000_001, dtype=np.int64) + expected = DatetimeIndex(rng.view("M8[us]"), freq="us") + tm.assert_index_equal(dti, expected) + + dti = date_range("2016-01-01", "2016-01-01 00:00:00.001", freq="ns", unit="ns") + rng = np.arange( + 1_451_606_400_000_000_000, 1_451_606_400_001_000_001, dtype=np.int64 + ) + expected = DatetimeIndex(rng.view("M8[ns]"), freq="ns") + tm.assert_index_equal(dti, expected) + + def test_date_range_freq_lower_than_endpoints(self): + start = Timestamp("2022-10-19 11:50:44.719781") + end = Timestamp("2022-10-19 11:50:47.066458") + + # start and end cannot be cast to "s" unit without lossy rounding, + # so we do not allow this in date_range + with pytest.raises(ValueError, match="Cannot losslessly convert units"): + date_range(start, end, periods=3, unit="s") + + # but we can losslessly cast to "us" + dti = date_range(start, end, periods=2, unit="us") + rng = np.array( + [start.as_unit("us")._value, end.as_unit("us")._value], dtype=np.int64 + ) + expected = DatetimeIndex(rng.view("M8[us]")) + tm.assert_index_equal(dti, expected) + + def test_date_range_non_nano(self): + start = np.datetime64("1066-10-14") # Battle of Hastings + end = np.datetime64("2305-07-13") # Jean-Luc Picard's birthday + + dti = date_range(start, end, freq="D", unit="s") + assert dti.freq == "D" + assert dti.dtype == "M8[s]" + + exp = np.arange( + start.astype("M8[s]").view("i8"), + (end + 1).astype("M8[s]").view("i8"), + 24 * 3600, + ).view("M8[s]") + + tm.assert_numpy_array_equal(dti.to_numpy(), exp) + + +class TestDateRangeNonTickFreq: + # Tests revolving around less-common (non-Tick) `freq` keywords. + + def test_date_range_custom_business_month_begin(self, unit): + hcal = USFederalHolidayCalendar() + freq = offsets.CBMonthBegin(calendar=hcal) + dti = date_range(start="20120101", end="20130101", freq=freq, unit=unit) + assert all(freq.is_on_offset(x) for x in dti) + + expected = DatetimeIndex( + [ + "2012-01-03", + "2012-02-01", + "2012-03-01", + "2012-04-02", + "2012-05-01", + "2012-06-01", + "2012-07-02", + "2012-08-01", + "2012-09-04", + "2012-10-01", + "2012-11-01", + "2012-12-03", + ], + dtype=f"M8[{unit}]", + freq=freq, + ) + tm.assert_index_equal(dti, expected) + + def test_date_range_custom_business_month_end(self, unit): + hcal = USFederalHolidayCalendar() + freq = offsets.CBMonthEnd(calendar=hcal) + dti = date_range(start="20120101", end="20130101", freq=freq, unit=unit) + assert all(freq.is_on_offset(x) for x in dti) + + expected = DatetimeIndex( + [ + "2012-01-31", + "2012-02-29", + "2012-03-30", + "2012-04-30", + "2012-05-31", + "2012-06-29", + "2012-07-31", + "2012-08-31", + "2012-09-28", + "2012-10-31", + "2012-11-30", + "2012-12-31", + ], + dtype=f"M8[{unit}]", + freq=freq, + ) + tm.assert_index_equal(dti, expected) + + def test_date_range_with_custom_holidays(self, unit): + # GH#30593 + freq = offsets.CustomBusinessHour(start="15:00", holidays=["2020-11-26"]) + result = date_range(start="2020-11-25 15:00", periods=4, freq=freq, unit=unit) + expected = DatetimeIndex( + [ + "2020-11-25 15:00:00", + "2020-11-25 16:00:00", + "2020-11-27 15:00:00", + "2020-11-27 16:00:00", + ], + dtype=f"M8[{unit}]", + freq=freq, + ) + tm.assert_index_equal(result, expected) + + def test_date_range_businesshour(self, unit): + idx = DatetimeIndex( + [ + "2014-07-04 09:00", + "2014-07-04 10:00", + "2014-07-04 11:00", + "2014-07-04 12:00", + "2014-07-04 13:00", + "2014-07-04 14:00", + "2014-07-04 15:00", + "2014-07-04 16:00", + ], + dtype=f"M8[{unit}]", + freq="bh", + ) + rng = date_range("2014-07-04 09:00", "2014-07-04 16:00", freq="bh", unit=unit) + tm.assert_index_equal(idx, rng) + + idx = DatetimeIndex( + ["2014-07-04 16:00", "2014-07-07 09:00"], dtype=f"M8[{unit}]", freq="bh" + ) + rng = date_range("2014-07-04 16:00", "2014-07-07 09:00", freq="bh", unit=unit) + tm.assert_index_equal(idx, rng) + + idx = DatetimeIndex( + [ + "2014-07-04 09:00", + "2014-07-04 10:00", + "2014-07-04 11:00", + "2014-07-04 12:00", + "2014-07-04 13:00", + "2014-07-04 14:00", + "2014-07-04 15:00", + "2014-07-04 16:00", + "2014-07-07 09:00", + "2014-07-07 10:00", + "2014-07-07 11:00", + "2014-07-07 12:00", + "2014-07-07 13:00", + "2014-07-07 14:00", + "2014-07-07 15:00", + "2014-07-07 16:00", + "2014-07-08 09:00", + "2014-07-08 10:00", + "2014-07-08 11:00", + "2014-07-08 12:00", + "2014-07-08 13:00", + "2014-07-08 14:00", + "2014-07-08 15:00", + "2014-07-08 16:00", + ], + dtype=f"M8[{unit}]", + freq="bh", + ) + rng = date_range("2014-07-04 09:00", "2014-07-08 16:00", freq="bh", unit=unit) + tm.assert_index_equal(idx, rng) + + def test_date_range_business_hour2(self, unit): + idx1 = date_range( + start="2014-07-04 15:00", end="2014-07-08 10:00", freq="bh", unit=unit + ) + idx2 = date_range(start="2014-07-04 15:00", periods=12, freq="bh", unit=unit) + idx3 = date_range(end="2014-07-08 10:00", periods=12, freq="bh", unit=unit) + expected = DatetimeIndex( + [ + "2014-07-04 15:00", + "2014-07-04 16:00", + "2014-07-07 09:00", + "2014-07-07 10:00", + "2014-07-07 11:00", + "2014-07-07 12:00", + "2014-07-07 13:00", + "2014-07-07 14:00", + "2014-07-07 15:00", + "2014-07-07 16:00", + "2014-07-08 09:00", + "2014-07-08 10:00", + ], + dtype=f"M8[{unit}]", + freq="bh", + ) + tm.assert_index_equal(idx1, expected) + tm.assert_index_equal(idx2, expected) + tm.assert_index_equal(idx3, expected) + + idx4 = date_range( + start="2014-07-04 15:45", end="2014-07-08 10:45", freq="bh", unit=unit + ) + idx5 = date_range(start="2014-07-04 15:45", periods=12, freq="bh", unit=unit) + idx6 = date_range(end="2014-07-08 10:45", periods=12, freq="bh", unit=unit) + + expected2 = expected + Timedelta(minutes=45).as_unit(unit) + expected2.freq = "bh" + tm.assert_index_equal(idx4, expected2) + tm.assert_index_equal(idx5, expected2) + tm.assert_index_equal(idx6, expected2) + + def test_date_range_business_hour_short(self, unit): + # GH#49835 + idx4 = date_range(start="2014-07-01 10:00", freq="bh", periods=1, unit=unit) + expected4 = DatetimeIndex(["2014-07-01 10:00"], dtype=f"M8[{unit}]", freq="bh") + tm.assert_index_equal(idx4, expected4) + + def test_date_range_year_start(self, unit): + # see GH#9313 + rng = date_range("1/1/2013", "7/1/2017", freq="YS", unit=unit) + exp = DatetimeIndex( + ["2013-01-01", "2014-01-01", "2015-01-01", "2016-01-01", "2017-01-01"], + dtype=f"M8[{unit}]", + freq="YS", + ) + tm.assert_index_equal(rng, exp) + + def test_date_range_year_end(self, unit): + # see GH#9313 + rng = date_range("1/1/2013", "7/1/2017", freq="YE", unit=unit) + exp = DatetimeIndex( + ["2013-12-31", "2014-12-31", "2015-12-31", "2016-12-31"], + dtype=f"M8[{unit}]", + freq="YE", + ) + tm.assert_index_equal(rng, exp) + + def test_date_range_negative_freq_year_end(self, unit): + # GH#11018 + rng = date_range("2011-12-31", freq="-2YE", periods=3, unit=unit) + exp = DatetimeIndex( + ["2011-12-31", "2009-12-31", "2007-12-31"], dtype=f"M8[{unit}]", freq="-2YE" + ) + tm.assert_index_equal(rng, exp) + assert rng.freq == "-2YE" + + def test_date_range_business_year_end_year(self, unit): + # see GH#9313 + rng = date_range("1/1/2013", "7/1/2017", freq="BYE", unit=unit) + exp = DatetimeIndex( + ["2013-12-31", "2014-12-31", "2015-12-31", "2016-12-30"], + dtype=f"M8[{unit}]", + freq="BYE", + ) + tm.assert_index_equal(rng, exp) + + def test_date_range_bms(self, unit): + # GH#1645 + result = date_range("1/1/2000", periods=10, freq="BMS", unit=unit) + + expected = DatetimeIndex( + [ + "2000-01-03", + "2000-02-01", + "2000-03-01", + "2000-04-03", + "2000-05-01", + "2000-06-01", + "2000-07-03", + "2000-08-01", + "2000-09-01", + "2000-10-02", + ], + dtype=f"M8[{unit}]", + freq="BMS", + ) + tm.assert_index_equal(result, expected) + + def test_date_range_semi_month_begin(self, unit): + dates = [ + datetime(2007, 12, 15), + datetime(2008, 1, 1), + datetime(2008, 1, 15), + datetime(2008, 2, 1), + datetime(2008, 2, 15), + datetime(2008, 3, 1), + datetime(2008, 3, 15), + datetime(2008, 4, 1), + datetime(2008, 4, 15), + datetime(2008, 5, 1), + datetime(2008, 5, 15), + datetime(2008, 6, 1), + datetime(2008, 6, 15), + datetime(2008, 7, 1), + datetime(2008, 7, 15), + datetime(2008, 8, 1), + datetime(2008, 8, 15), + datetime(2008, 9, 1), + datetime(2008, 9, 15), + datetime(2008, 10, 1), + datetime(2008, 10, 15), + datetime(2008, 11, 1), + datetime(2008, 11, 15), + datetime(2008, 12, 1), + datetime(2008, 12, 15), + ] + # ensure generating a range with DatetimeIndex gives same result + result = date_range(start=dates[0], end=dates[-1], freq="SMS", unit=unit) + exp = DatetimeIndex(dates, dtype=f"M8[{unit}]", freq="SMS") + tm.assert_index_equal(result, exp) + + def test_date_range_semi_month_end(self, unit): + dates = [ + datetime(2007, 12, 31), + datetime(2008, 1, 15), + datetime(2008, 1, 31), + datetime(2008, 2, 15), + datetime(2008, 2, 29), + datetime(2008, 3, 15), + datetime(2008, 3, 31), + datetime(2008, 4, 15), + datetime(2008, 4, 30), + datetime(2008, 5, 15), + datetime(2008, 5, 31), + datetime(2008, 6, 15), + datetime(2008, 6, 30), + datetime(2008, 7, 15), + datetime(2008, 7, 31), + datetime(2008, 8, 15), + datetime(2008, 8, 31), + datetime(2008, 9, 15), + datetime(2008, 9, 30), + datetime(2008, 10, 15), + datetime(2008, 10, 31), + datetime(2008, 11, 15), + datetime(2008, 11, 30), + datetime(2008, 12, 15), + datetime(2008, 12, 31), + ] + # ensure generating a range with DatetimeIndex gives same result + result = date_range(start=dates[0], end=dates[-1], freq="SME", unit=unit) + exp = DatetimeIndex(dates, dtype=f"M8[{unit}]", freq="SME") + tm.assert_index_equal(result, exp) + + def test_date_range_week_of_month(self, unit): + # GH#20517 + # Note the start here is not on_offset for this freq + result = date_range(start="20110101", periods=1, freq="WOM-1MON", unit=unit) + expected = DatetimeIndex(["2011-01-03"], dtype=f"M8[{unit}]", freq="WOM-1MON") + tm.assert_index_equal(result, expected) + + result2 = date_range(start="20110101", periods=2, freq="WOM-1MON", unit=unit) + expected2 = DatetimeIndex( + ["2011-01-03", "2011-02-07"], dtype=f"M8[{unit}]", freq="WOM-1MON" + ) + tm.assert_index_equal(result2, expected2) + + def test_date_range_week_of_month2(self, unit): + # GH#5115, GH#5348 + result = date_range("2013-1-1", periods=4, freq="WOM-1SAT", unit=unit) + expected = DatetimeIndex( + ["2013-01-05", "2013-02-02", "2013-03-02", "2013-04-06"], + dtype=f"M8[{unit}]", + freq="WOM-1SAT", + ) + tm.assert_index_equal(result, expected) + + def test_date_range_negative_freq_month_end(self, unit): + # GH#11018 + rng = date_range("2011-01-31", freq="-2ME", periods=3, unit=unit) + exp = DatetimeIndex( + ["2011-01-31", "2010-11-30", "2010-09-30"], dtype=f"M8[{unit}]", freq="-2ME" + ) + tm.assert_index_equal(rng, exp) + assert rng.freq == "-2ME" + + def test_date_range_fy5253(self, unit): + freq = offsets.FY5253(startingMonth=1, weekday=3, variation="nearest") + dti = date_range( + start="2013-01-01", + periods=2, + freq=freq, + unit=unit, + ) + expected = DatetimeIndex( + ["2013-01-31", "2014-01-30"], dtype=f"M8[{unit}]", freq=freq + ) + + tm.assert_index_equal(dti, expected) + + @pytest.mark.parametrize( + "freqstr,offset", + [ + ("QS", offsets.QuarterBegin(startingMonth=1)), + ("BQE", offsets.BQuarterEnd(startingMonth=12)), + ("W-SUN", offsets.Week(weekday=6)), + ], + ) + def test_date_range_freqstr_matches_offset(self, freqstr, offset): + sdate = datetime(1999, 12, 25) + edate = datetime(2000, 1, 1) + + idx1 = date_range(start=sdate, end=edate, freq=freqstr) + idx2 = date_range(start=sdate, end=edate, freq=offset) + assert len(idx1) == len(idx2) + assert idx1.freq == idx2.freq diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_datetime.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_datetime.py new file mode 100644 index 0000000000000000000000000000000000000000..f7fc64d4b01633edc011349441b1f75dd2f00cb9 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_datetime.py @@ -0,0 +1,216 @@ +import datetime as dt +from datetime import date +import re + +import numpy as np +import pytest + +from pandas.compat.numpy import np_long + +import pandas as pd +from pandas import ( + DataFrame, + DatetimeIndex, + Index, + Timestamp, + date_range, + offsets, +) +import pandas._testing as tm + + +class TestDatetimeIndex: + def test_is_(self): + dti = date_range(start="1/1/2005", end="12/1/2005", freq="ME") + assert dti.is_(dti) + assert dti.is_(dti.view()) + assert not dti.is_(dti.copy()) + + def test_time_overflow_for_32bit_machines(self): + # GH8943. On some machines NumPy defaults to np.int32 (for example, + # 32-bit Linux machines). In the function _generate_regular_range + # found in tseries/index.py, `periods` gets multiplied by `strides` + # (which has value 1e9) and since the max value for np.int32 is ~2e9, + # and since those machines won't promote np.int32 to np.int64, we get + # overflow. + periods = np_long(1000) + + idx1 = date_range(start="2000", periods=periods, freq="s") + assert len(idx1) == periods + + idx2 = date_range(end="2000", periods=periods, freq="s") + assert len(idx2) == periods + + def test_nat(self): + assert DatetimeIndex([np.nan])[0] is pd.NaT + + def test_week_of_month_frequency(self): + # GH 5348: "ValueError: Could not evaluate WOM-1SUN" shouldn't raise + d1 = date(2002, 9, 1) + d2 = date(2013, 10, 27) + d3 = date(2012, 9, 30) + idx1 = DatetimeIndex([d1, d2]) + idx2 = DatetimeIndex([d3]) + result_append = idx1.append(idx2) + expected = DatetimeIndex([d1, d2, d3]) + tm.assert_index_equal(result_append, expected) + result_union = idx1.union(idx2) + expected = DatetimeIndex([d1, d3, d2]) + tm.assert_index_equal(result_union, expected) + + def test_append_nondatetimeindex(self): + rng = date_range("1/1/2000", periods=10) + idx = Index(["a", "b", "c", "d"]) + + result = rng.append(idx) + assert isinstance(result[0], Timestamp) + + def test_misc_coverage(self): + rng = date_range("1/1/2000", periods=5) + result = rng.groupby(rng.day) + assert isinstance(next(iter(result.values()))[0], Timestamp) + + # TODO: belongs in frame groupby tests? + def test_groupby_function_tuple_1677(self): + df = DataFrame( + np.random.default_rng(2).random(100), + index=date_range("1/1/2000", periods=100), + ) + monthly_group = df.groupby(lambda x: (x.year, x.month)) + + result = monthly_group.mean() + assert isinstance(result.index[0], tuple) + + def assert_index_parameters(self, index): + assert index.freq == "40960ns" + assert index.inferred_freq == "40960ns" + + def test_ns_index(self): + nsamples = 400 + ns = int(1e9 / 24414) + dtstart = np.datetime64("2012-09-20T00:00:00") + + dt = dtstart + np.arange(nsamples) * np.timedelta64(ns, "ns") + freq = ns * offsets.Nano() + index = DatetimeIndex(dt, freq=freq, name="time") + self.assert_index_parameters(index) + + new_index = date_range(start=index[0], end=index[-1], freq=index.freq) + self.assert_index_parameters(new_index) + + def test_asarray_tz_naive(self): + # This shouldn't produce a warning. + idx = date_range("2000", periods=2) + # M8[ns] by default + result = np.asarray(idx) + + expected = np.array(["2000-01-01", "2000-01-02"], dtype="M8[ns]") + tm.assert_numpy_array_equal(result, expected) + + # optionally, object + result = np.asarray(idx, dtype=object) + + expected = np.array([Timestamp("2000-01-01"), Timestamp("2000-01-02")]) + tm.assert_numpy_array_equal(result, expected) + + def test_asarray_tz_aware(self): + tz = "US/Central" + idx = date_range("2000", periods=2, tz=tz) + expected = np.array(["2000-01-01T06", "2000-01-02T06"], dtype="M8[ns]") + result = np.asarray(idx, dtype="datetime64[ns]") + + tm.assert_numpy_array_equal(result, expected) + + # Old behavior with no warning + result = np.asarray(idx, dtype="M8[ns]") + + tm.assert_numpy_array_equal(result, expected) + + # Future behavior with no warning + expected = np.array( + [Timestamp("2000-01-01", tz=tz), Timestamp("2000-01-02", tz=tz)] + ) + result = np.asarray(idx, dtype=object) + + tm.assert_numpy_array_equal(result, expected) + + def test_CBH_deprecated(self): + msg = "'CBH' is deprecated and will be removed in a future version." + + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = date_range( + dt.datetime(2022, 12, 11), dt.datetime(2022, 12, 13), freq="CBH" + ) + result = DatetimeIndex( + [ + "2022-12-12 09:00:00", + "2022-12-12 10:00:00", + "2022-12-12 11:00:00", + "2022-12-12 12:00:00", + "2022-12-12 13:00:00", + "2022-12-12 14:00:00", + "2022-12-12 15:00:00", + "2022-12-12 16:00:00", + ], + dtype="datetime64[ns]", + freq="cbh", + ) + + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "freq_depr, expected_values, expected_freq", + [ + ( + "AS-AUG", + ["2021-08-01", "2022-08-01", "2023-08-01"], + "YS-AUG", + ), + ( + "1BAS-MAY", + ["2021-05-03", "2022-05-02", "2023-05-01"], + "1BYS-MAY", + ), + ], + ) + def test_AS_BAS_deprecated(self, freq_depr, expected_values, expected_freq): + # GH#55479 + freq_msg = re.split("[0-9]*", freq_depr, maxsplit=1)[1] + msg = f"'{freq_msg}' is deprecated and will be removed in a future version." + + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = date_range( + dt.datetime(2020, 12, 1), dt.datetime(2023, 12, 1), freq=freq_depr + ) + result = DatetimeIndex( + expected_values, + dtype="datetime64[ns]", + freq=expected_freq, + ) + + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "freq, expected_values, freq_depr", + [ + ("2BYE-MAR", ["2016-03-31"], "2BA-MAR"), + ("2BYE-JUN", ["2016-06-30"], "2BY-JUN"), + ("2BME", ["2016-02-29", "2016-04-29", "2016-06-30"], "2BM"), + ("2BQE", ["2016-03-31"], "2BQ"), + ("1BQE-MAR", ["2016-03-31", "2016-06-30"], "1BQ-MAR"), + ], + ) + def test_BM_BQ_BY_deprecated(self, freq, expected_values, freq_depr): + # GH#52064 + msg = f"'{freq_depr[1:]}' is deprecated and will be removed " + f"in a future version, please use '{freq[1:]}' instead." + + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = date_range(start="2016-02-21", end="2016-08-21", freq=freq_depr) + result = DatetimeIndex( + data=expected_values, + dtype="datetime64[ns]", + freq=freq, + ) + + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_formats.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_formats.py new file mode 100644 index 0000000000000000000000000000000000000000..b52eed8c509c6e655425eb5b9be3351f369fee4d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_formats.py @@ -0,0 +1,356 @@ +from datetime import datetime + +import dateutil.tz +import numpy as np +import pytest +import pytz + +import pandas as pd +from pandas import ( + DatetimeIndex, + NaT, + Series, +) +import pandas._testing as tm + + +@pytest.fixture(params=["s", "ms", "us", "ns"]) +def unit(request): + return request.param + + +def test_get_values_for_csv(): + index = pd.date_range(freq="1D", periods=3, start="2017-01-01") + + # First, with no arguments. + expected = np.array(["2017-01-01", "2017-01-02", "2017-01-03"], dtype=object) + + result = index._get_values_for_csv() + tm.assert_numpy_array_equal(result, expected) + + # No NaN values, so na_rep has no effect + result = index._get_values_for_csv(na_rep="pandas") + tm.assert_numpy_array_equal(result, expected) + + # Make sure date formatting works + expected = np.array(["01-2017-01", "01-2017-02", "01-2017-03"], dtype=object) + + result = index._get_values_for_csv(date_format="%m-%Y-%d") + tm.assert_numpy_array_equal(result, expected) + + # NULL object handling should work + index = DatetimeIndex(["2017-01-01", NaT, "2017-01-03"]) + expected = np.array(["2017-01-01", "NaT", "2017-01-03"], dtype=object) + + result = index._get_values_for_csv(na_rep="NaT") + tm.assert_numpy_array_equal(result, expected) + + expected = np.array(["2017-01-01", "pandas", "2017-01-03"], dtype=object) + + result = index._get_values_for_csv(na_rep="pandas") + tm.assert_numpy_array_equal(result, expected) + + result = index._get_values_for_csv(na_rep="NaT", date_format="%Y-%m-%d %H:%M:%S.%f") + expected = np.array( + ["2017-01-01 00:00:00.000000", "NaT", "2017-01-03 00:00:00.000000"], + dtype=object, + ) + tm.assert_numpy_array_equal(result, expected) + + # invalid format + result = index._get_values_for_csv(na_rep="NaT", date_format="foo") + expected = np.array(["foo", "NaT", "foo"], dtype=object) + tm.assert_numpy_array_equal(result, expected) + + +class TestDatetimeIndexRendering: + @pytest.mark.parametrize("tzstr", ["US/Eastern", "dateutil/US/Eastern"]) + def test_dti_with_timezone_repr(self, tzstr): + rng = pd.date_range("4/13/2010", "5/6/2010") + + rng_eastern = rng.tz_localize(tzstr) + + rng_repr = repr(rng_eastern) + assert "2010-04-13 00:00:00" in rng_repr + + def test_dti_repr_dates(self): + text = str(pd.to_datetime([datetime(2013, 1, 1), datetime(2014, 1, 1)])) + assert "['2013-01-01'," in text + assert ", '2014-01-01']" in text + + def test_dti_repr_mixed(self): + text = str( + pd.to_datetime( + [datetime(2013, 1, 1), datetime(2014, 1, 1, 12), datetime(2014, 1, 1)] + ) + ) + assert "'2013-01-01 00:00:00'," in text + assert "'2014-01-01 00:00:00']" in text + + def test_dti_repr_short(self): + dr = pd.date_range(start="1/1/2012", periods=1) + repr(dr) + + dr = pd.date_range(start="1/1/2012", periods=2) + repr(dr) + + dr = pd.date_range(start="1/1/2012", periods=3) + repr(dr) + + @pytest.mark.parametrize( + "dates, freq, expected_repr", + [ + ( + ["2012-01-01 00:00:00"], + "60min", + ( + "DatetimeIndex(['2012-01-01 00:00:00'], " + "dtype='datetime64[ns]', freq='60min')" + ), + ), + ( + ["2012-01-01 00:00:00", "2012-01-01 01:00:00"], + "60min", + "DatetimeIndex(['2012-01-01 00:00:00', '2012-01-01 01:00:00'], " + "dtype='datetime64[ns]', freq='60min')", + ), + ( + ["2012-01-01"], + "24h", + "DatetimeIndex(['2012-01-01'], dtype='datetime64[ns]', freq='24h')", + ), + ], + ) + def test_dti_repr_time_midnight(self, dates, freq, expected_repr, unit): + # GH53634 + dti = DatetimeIndex(dates, freq).as_unit(unit) + actual_repr = repr(dti) + assert actual_repr == expected_repr.replace("[ns]", f"[{unit}]") + + def test_dti_representation(self, unit): + idxs = [] + idxs.append(DatetimeIndex([], freq="D")) + idxs.append(DatetimeIndex(["2011-01-01"], freq="D")) + idxs.append(DatetimeIndex(["2011-01-01", "2011-01-02"], freq="D")) + idxs.append(DatetimeIndex(["2011-01-01", "2011-01-02", "2011-01-03"], freq="D")) + idxs.append( + DatetimeIndex( + ["2011-01-01 09:00", "2011-01-01 10:00", "2011-01-01 11:00"], + freq="h", + tz="Asia/Tokyo", + ) + ) + idxs.append( + DatetimeIndex( + ["2011-01-01 09:00", "2011-01-01 10:00", NaT], tz="US/Eastern" + ) + ) + idxs.append( + DatetimeIndex(["2011-01-01 09:00", "2011-01-01 10:00", NaT], tz="UTC") + ) + + exp = [] + exp.append("DatetimeIndex([], dtype='datetime64[ns]', freq='D')") + exp.append("DatetimeIndex(['2011-01-01'], dtype='datetime64[ns]', freq='D')") + exp.append( + "DatetimeIndex(['2011-01-01', '2011-01-02'], " + "dtype='datetime64[ns]', freq='D')" + ) + exp.append( + "DatetimeIndex(['2011-01-01', '2011-01-02', '2011-01-03'], " + "dtype='datetime64[ns]', freq='D')" + ) + exp.append( + "DatetimeIndex(['2011-01-01 09:00:00+09:00', " + "'2011-01-01 10:00:00+09:00', '2011-01-01 11:00:00+09:00']" + ", dtype='datetime64[ns, Asia/Tokyo]', freq='h')" + ) + exp.append( + "DatetimeIndex(['2011-01-01 09:00:00-05:00', " + "'2011-01-01 10:00:00-05:00', 'NaT'], " + "dtype='datetime64[ns, US/Eastern]', freq=None)" + ) + exp.append( + "DatetimeIndex(['2011-01-01 09:00:00+00:00', " + "'2011-01-01 10:00:00+00:00', 'NaT'], " + "dtype='datetime64[ns, UTC]', freq=None)" + "" + ) + + with pd.option_context("display.width", 300): + for index, expected in zip(idxs, exp): + index = index.as_unit(unit) + expected = expected.replace("[ns", f"[{unit}") + result = repr(index) + assert result == expected + result = str(index) + assert result == expected + + # TODO: this is a Series.__repr__ test + def test_dti_representation_to_series(self, unit): + idx1 = DatetimeIndex([], freq="D") + idx2 = DatetimeIndex(["2011-01-01"], freq="D") + idx3 = DatetimeIndex(["2011-01-01", "2011-01-02"], freq="D") + idx4 = DatetimeIndex(["2011-01-01", "2011-01-02", "2011-01-03"], freq="D") + idx5 = DatetimeIndex( + ["2011-01-01 09:00", "2011-01-01 10:00", "2011-01-01 11:00"], + freq="h", + tz="Asia/Tokyo", + ) + idx6 = DatetimeIndex( + ["2011-01-01 09:00", "2011-01-01 10:00", NaT], tz="US/Eastern" + ) + idx7 = DatetimeIndex(["2011-01-01 09:00", "2011-01-02 10:15"]) + + exp1 = """Series([], dtype: datetime64[ns])""" + + exp2 = "0 2011-01-01\ndtype: datetime64[ns]" + + exp3 = "0 2011-01-01\n1 2011-01-02\ndtype: datetime64[ns]" + + exp4 = ( + "0 2011-01-01\n" + "1 2011-01-02\n" + "2 2011-01-03\n" + "dtype: datetime64[ns]" + ) + + exp5 = ( + "0 2011-01-01 09:00:00+09:00\n" + "1 2011-01-01 10:00:00+09:00\n" + "2 2011-01-01 11:00:00+09:00\n" + "dtype: datetime64[ns, Asia/Tokyo]" + ) + + exp6 = ( + "0 2011-01-01 09:00:00-05:00\n" + "1 2011-01-01 10:00:00-05:00\n" + "2 NaT\n" + "dtype: datetime64[ns, US/Eastern]" + ) + + exp7 = ( + "0 2011-01-01 09:00:00\n" + "1 2011-01-02 10:15:00\n" + "dtype: datetime64[ns]" + ) + + with pd.option_context("display.width", 300): + for idx, expected in zip( + [idx1, idx2, idx3, idx4, idx5, idx6, idx7], + [exp1, exp2, exp3, exp4, exp5, exp6, exp7], + ): + ser = Series(idx.as_unit(unit)) + result = repr(ser) + assert result == expected.replace("[ns", f"[{unit}") + + def test_dti_summary(self): + # GH#9116 + idx1 = DatetimeIndex([], freq="D") + idx2 = DatetimeIndex(["2011-01-01"], freq="D") + idx3 = DatetimeIndex(["2011-01-01", "2011-01-02"], freq="D") + idx4 = DatetimeIndex(["2011-01-01", "2011-01-02", "2011-01-03"], freq="D") + idx5 = DatetimeIndex( + ["2011-01-01 09:00", "2011-01-01 10:00", "2011-01-01 11:00"], + freq="h", + tz="Asia/Tokyo", + ) + idx6 = DatetimeIndex( + ["2011-01-01 09:00", "2011-01-01 10:00", NaT], tz="US/Eastern" + ) + + exp1 = "DatetimeIndex: 0 entries\nFreq: D" + + exp2 = "DatetimeIndex: 1 entries, 2011-01-01 to 2011-01-01\nFreq: D" + + exp3 = "DatetimeIndex: 2 entries, 2011-01-01 to 2011-01-02\nFreq: D" + + exp4 = "DatetimeIndex: 3 entries, 2011-01-01 to 2011-01-03\nFreq: D" + + exp5 = ( + "DatetimeIndex: 3 entries, 2011-01-01 09:00:00+09:00 " + "to 2011-01-01 11:00:00+09:00\n" + "Freq: h" + ) + + exp6 = """DatetimeIndex: 3 entries, 2011-01-01 09:00:00-05:00 to NaT""" + + for idx, expected in zip( + [idx1, idx2, idx3, idx4, idx5, idx6], [exp1, exp2, exp3, exp4, exp5, exp6] + ): + result = idx._summary() + assert result == expected + + @pytest.mark.parametrize("tz", [None, pytz.utc, dateutil.tz.tzutc()]) + @pytest.mark.parametrize("freq", ["B", "C"]) + def test_dti_business_repr_etc_smoke(self, tz, freq): + # only really care that it works + dti = pd.bdate_range( + datetime(2009, 1, 1), datetime(2010, 1, 1), tz=tz, freq=freq + ) + repr(dti) + dti._summary() + dti[2:2]._summary() + + +class TestFormat: + def test_format(self): + # GH#35439 + idx = pd.date_range("20130101", periods=5) + expected = [f"{x:%Y-%m-%d}" for x in idx] + msg = r"DatetimeIndex\.format is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + assert idx.format() == expected + + def test_format_with_name_time_info(self): + # bug I fixed 12/20/2011 + dates = pd.date_range("2011-01-01 04:00:00", periods=10, name="something") + + msg = "DatetimeIndex.format is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + formatted = dates.format(name=True) + assert formatted[0] == "something" + + def test_format_datetime_with_time(self): + dti = DatetimeIndex([datetime(2012, 2, 7), datetime(2012, 2, 7, 23)]) + + msg = "DatetimeIndex.format is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = dti.format() + expected = ["2012-02-07 00:00:00", "2012-02-07 23:00:00"] + assert len(result) == 2 + assert result == expected + + def test_format_datetime(self): + msg = "DatetimeIndex.format is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + formatted = pd.to_datetime([datetime(2003, 1, 1, 12), NaT]).format() + assert formatted[0] == "2003-01-01 12:00:00" + assert formatted[1] == "NaT" + + def test_format_date(self): + msg = "DatetimeIndex.format is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + formatted = pd.to_datetime([datetime(2003, 1, 1), NaT]).format() + assert formatted[0] == "2003-01-01" + assert formatted[1] == "NaT" + + def test_format_date_tz(self): + dti = pd.to_datetime([datetime(2013, 1, 1)], utc=True) + msg = "DatetimeIndex.format is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + formatted = dti.format() + assert formatted[0] == "2013-01-01 00:00:00+00:00" + + dti = pd.to_datetime([datetime(2013, 1, 1), NaT], utc=True) + with tm.assert_produces_warning(FutureWarning, match=msg): + formatted = dti.format() + assert formatted[0] == "2013-01-01 00:00:00+00:00" + + def test_format_date_explicit_date_format(self): + dti = pd.to_datetime([datetime(2003, 2, 1), NaT]) + msg = "DatetimeIndex.format is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + formatted = dti.format(date_format="%m-%d-%Y", na_rep="UT") + assert formatted[0] == "02-01-2003" + assert formatted[1] == "UT" diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_freq_attr.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_freq_attr.py new file mode 100644 index 0000000000000000000000000000000000000000..5cddf56cd1c73b3c00d8b59c6f99095ba9a704fb --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_freq_attr.py @@ -0,0 +1,61 @@ +import pytest + +from pandas import ( + DatetimeIndex, + date_range, +) + +from pandas.tseries.offsets import ( + BDay, + DateOffset, + Day, + Hour, +) + + +class TestFreq: + def test_freq_setter_errors(self): + # GH#20678 + idx = DatetimeIndex(["20180101", "20180103", "20180105"]) + + # setting with an incompatible freq + msg = ( + "Inferred frequency 2D from passed values does not conform to " + "passed frequency 5D" + ) + with pytest.raises(ValueError, match=msg): + idx._data.freq = "5D" + + # setting with non-freq string + with pytest.raises(ValueError, match="Invalid frequency"): + idx._data.freq = "foo" + + @pytest.mark.parametrize("values", [["20180101", "20180103", "20180105"], []]) + @pytest.mark.parametrize("freq", ["2D", Day(2), "2B", BDay(2), "48h", Hour(48)]) + @pytest.mark.parametrize("tz", [None, "US/Eastern"]) + def test_freq_setter(self, values, freq, tz): + # GH#20678 + idx = DatetimeIndex(values, tz=tz) + + # can set to an offset, converting from string if necessary + idx._data.freq = freq + assert idx.freq == freq + assert isinstance(idx.freq, DateOffset) + + # can reset to None + idx._data.freq = None + assert idx.freq is None + + def test_freq_view_safe(self): + # Setting the freq for one DatetimeIndex shouldn't alter the freq + # for another that views the same data + + dti = date_range("2016-01-01", periods=5) + dta = dti._data + + dti2 = DatetimeIndex(dta)._with_freq(None) + assert dti2.freq is None + + # Original was not altered + assert dti.freq == "D" + assert dta.freq == "D" diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_indexing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_indexing.py new file mode 100644 index 0000000000000000000000000000000000000000..bfbcdcff51ee6e7f50325962a44209a5c5bf9653 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_indexing.py @@ -0,0 +1,717 @@ +from datetime import ( + date, + datetime, + time, + timedelta, +) + +import numpy as np +import pytest + +from pandas._libs import index as libindex +from pandas.compat.numpy import np_long + +import pandas as pd +from pandas import ( + DatetimeIndex, + Index, + Timestamp, + bdate_range, + date_range, + notna, +) +import pandas._testing as tm + +from pandas.tseries.frequencies import to_offset + +START, END = datetime(2009, 1, 1), datetime(2010, 1, 1) + + +class TestGetItem: + def test_getitem_slice_keeps_name(self): + # GH4226 + st = Timestamp("2013-07-01 00:00:00", tz="America/Los_Angeles") + et = Timestamp("2013-07-02 00:00:00", tz="America/Los_Angeles") + dr = date_range(st, et, freq="h", name="timebucket") + assert dr[1:].name == dr.name + + @pytest.mark.parametrize("tz", [None, "Asia/Tokyo"]) + def test_getitem(self, tz): + idx = date_range("2011-01-01", "2011-01-31", freq="D", tz=tz, name="idx") + + result = idx[0] + assert result == Timestamp("2011-01-01", tz=idx.tz) + + result = idx[0:5] + expected = date_range( + "2011-01-01", "2011-01-05", freq="D", tz=idx.tz, name="idx" + ) + tm.assert_index_equal(result, expected) + assert result.freq == expected.freq + + result = idx[0:10:2] + expected = date_range( + "2011-01-01", "2011-01-09", freq="2D", tz=idx.tz, name="idx" + ) + tm.assert_index_equal(result, expected) + assert result.freq == expected.freq + + result = idx[-20:-5:3] + expected = date_range( + "2011-01-12", "2011-01-24", freq="3D", tz=idx.tz, name="idx" + ) + tm.assert_index_equal(result, expected) + assert result.freq == expected.freq + + result = idx[4::-1] + expected = DatetimeIndex( + ["2011-01-05", "2011-01-04", "2011-01-03", "2011-01-02", "2011-01-01"], + dtype=idx.dtype, + freq="-1D", + name="idx", + ) + tm.assert_index_equal(result, expected) + assert result.freq == expected.freq + + @pytest.mark.parametrize("freq", ["B", "C"]) + def test_dti_business_getitem(self, freq): + rng = bdate_range(START, END, freq=freq) + smaller = rng[:5] + exp = DatetimeIndex(rng.view(np.ndarray)[:5], freq=freq) + tm.assert_index_equal(smaller, exp) + assert smaller.freq == exp.freq + assert smaller.freq == rng.freq + + sliced = rng[::5] + assert sliced.freq == to_offset(freq) * 5 + + fancy_indexed = rng[[4, 3, 2, 1, 0]] + assert len(fancy_indexed) == 5 + assert isinstance(fancy_indexed, DatetimeIndex) + assert fancy_indexed.freq is None + + # 32-bit vs. 64-bit platforms + assert rng[4] == rng[np_long(4)] + + @pytest.mark.parametrize("freq", ["B", "C"]) + def test_dti_business_getitem_matplotlib_hackaround(self, freq): + rng = bdate_range(START, END, freq=freq) + with pytest.raises(ValueError, match="Multi-dimensional indexing"): + # GH#30588 multi-dimensional indexing deprecated + rng[:, None] + + def test_getitem_int_list(self): + dti = date_range(start="1/1/2005", end="12/1/2005", freq="ME") + dti2 = dti[[1, 3, 5]] + + v1 = dti2[0] + v2 = dti2[1] + v3 = dti2[2] + + assert v1 == Timestamp("2/28/2005") + assert v2 == Timestamp("4/30/2005") + assert v3 == Timestamp("6/30/2005") + + # getitem with non-slice drops freq + assert dti2.freq is None + + +class TestWhere: + def test_where_doesnt_retain_freq(self): + dti = date_range("20130101", periods=3, freq="D", name="idx") + cond = [True, True, False] + expected = DatetimeIndex([dti[0], dti[1], dti[0]], freq=None, name="idx") + + result = dti.where(cond, dti[::-1]) + tm.assert_index_equal(result, expected) + + def test_where_other(self): + # other is ndarray or Index + i = date_range("20130101", periods=3, tz="US/Eastern") + + for arr in [np.nan, pd.NaT]: + result = i.where(notna(i), other=arr) + expected = i + tm.assert_index_equal(result, expected) + + i2 = i.copy() + i2 = Index([pd.NaT, pd.NaT] + i[2:].tolist()) + result = i.where(notna(i2), i2) + tm.assert_index_equal(result, i2) + + i2 = i.copy() + i2 = Index([pd.NaT, pd.NaT] + i[2:].tolist()) + result = i.where(notna(i2), i2._values) + tm.assert_index_equal(result, i2) + + def test_where_invalid_dtypes(self): + dti = date_range("20130101", periods=3, tz="US/Eastern") + + tail = dti[2:].tolist() + i2 = Index([pd.NaT, pd.NaT] + tail) + + mask = notna(i2) + + # passing tz-naive ndarray to tzaware DTI + result = dti.where(mask, i2.values) + expected = Index([pd.NaT.asm8, pd.NaT.asm8] + tail, dtype=object) + tm.assert_index_equal(result, expected) + + # passing tz-aware DTI to tznaive DTI + naive = dti.tz_localize(None) + result = naive.where(mask, i2) + expected = Index([i2[0], i2[1]] + naive[2:].tolist(), dtype=object) + tm.assert_index_equal(result, expected) + + pi = i2.tz_localize(None).to_period("D") + result = dti.where(mask, pi) + expected = Index([pi[0], pi[1]] + tail, dtype=object) + tm.assert_index_equal(result, expected) + + tda = i2.asi8.view("timedelta64[ns]") + result = dti.where(mask, tda) + expected = Index([tda[0], tda[1]] + tail, dtype=object) + assert isinstance(expected[0], np.timedelta64) + tm.assert_index_equal(result, expected) + + result = dti.where(mask, i2.asi8) + expected = Index([pd.NaT._value, pd.NaT._value] + tail, dtype=object) + assert isinstance(expected[0], int) + tm.assert_index_equal(result, expected) + + # non-matching scalar + td = pd.Timedelta(days=4) + result = dti.where(mask, td) + expected = Index([td, td] + tail, dtype=object) + assert expected[0] is td + tm.assert_index_equal(result, expected) + + def test_where_mismatched_nat(self, tz_aware_fixture): + tz = tz_aware_fixture + dti = date_range("2013-01-01", periods=3, tz=tz) + cond = np.array([True, False, True]) + + tdnat = np.timedelta64("NaT", "ns") + expected = Index([dti[0], tdnat, dti[2]], dtype=object) + assert expected[1] is tdnat + + result = dti.where(cond, tdnat) + tm.assert_index_equal(result, expected) + + def test_where_tz(self): + i = date_range("20130101", periods=3, tz="US/Eastern") + result = i.where(notna(i)) + expected = i + tm.assert_index_equal(result, expected) + + i2 = i.copy() + i2 = Index([pd.NaT, pd.NaT] + i[2:].tolist()) + result = i.where(notna(i2)) + expected = i2 + tm.assert_index_equal(result, expected) + + +class TestTake: + @pytest.mark.parametrize("tzstr", ["US/Eastern", "dateutil/US/Eastern"]) + def test_dti_take_dont_lose_meta(self, tzstr): + rng = date_range("1/1/2000", periods=20, tz=tzstr) + + result = rng.take(range(5)) + assert result.tz == rng.tz + assert result.freq == rng.freq + + def test_take_nan_first_datetime(self): + index = DatetimeIndex([pd.NaT, Timestamp("20130101"), Timestamp("20130102")]) + result = index.take([-1, 0, 1]) + expected = DatetimeIndex([index[-1], index[0], index[1]]) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("tz", [None, "Asia/Tokyo"]) + def test_take(self, tz): + # GH#10295 + idx = date_range("2011-01-01", "2011-01-31", freq="D", name="idx", tz=tz) + + result = idx.take([0]) + assert result == Timestamp("2011-01-01", tz=idx.tz) + + result = idx.take([0, 1, 2]) + expected = date_range( + "2011-01-01", "2011-01-03", freq="D", tz=idx.tz, name="idx" + ) + tm.assert_index_equal(result, expected) + assert result.freq == expected.freq + + result = idx.take([0, 2, 4]) + expected = date_range( + "2011-01-01", "2011-01-05", freq="2D", tz=idx.tz, name="idx" + ) + tm.assert_index_equal(result, expected) + assert result.freq == expected.freq + + result = idx.take([7, 4, 1]) + expected = date_range( + "2011-01-08", "2011-01-02", freq="-3D", tz=idx.tz, name="idx" + ) + tm.assert_index_equal(result, expected) + assert result.freq == expected.freq + + result = idx.take([3, 2, 5]) + expected = DatetimeIndex( + ["2011-01-04", "2011-01-03", "2011-01-06"], + dtype=idx.dtype, + freq=None, + name="idx", + ) + tm.assert_index_equal(result, expected) + assert result.freq is None + + result = idx.take([-3, 2, 5]) + expected = DatetimeIndex( + ["2011-01-29", "2011-01-03", "2011-01-06"], + dtype=idx.dtype, + freq=None, + name="idx", + ) + tm.assert_index_equal(result, expected) + assert result.freq is None + + def test_take_invalid_kwargs(self): + idx = date_range("2011-01-01", "2011-01-31", freq="D", name="idx") + indices = [1, 6, 5, 9, 10, 13, 15, 3] + + msg = r"take\(\) got an unexpected keyword argument 'foo'" + with pytest.raises(TypeError, match=msg): + idx.take(indices, foo=2) + + msg = "the 'out' parameter is not supported" + with pytest.raises(ValueError, match=msg): + idx.take(indices, out=indices) + + msg = "the 'mode' parameter is not supported" + with pytest.raises(ValueError, match=msg): + idx.take(indices, mode="clip") + + # TODO: This method came from test_datetime; de-dup with version above + @pytest.mark.parametrize("tz", [None, "US/Eastern", "Asia/Tokyo"]) + def test_take2(self, tz): + dates = [ + datetime(2010, 1, 1, 14), + datetime(2010, 1, 1, 15), + datetime(2010, 1, 1, 17), + datetime(2010, 1, 1, 21), + ] + + idx = date_range( + start="2010-01-01 09:00", + end="2010-02-01 09:00", + freq="h", + tz=tz, + name="idx", + ) + expected = DatetimeIndex(dates, freq=None, name="idx", dtype=idx.dtype) + + taken1 = idx.take([5, 6, 8, 12]) + taken2 = idx[[5, 6, 8, 12]] + + for taken in [taken1, taken2]: + tm.assert_index_equal(taken, expected) + assert isinstance(taken, DatetimeIndex) + assert taken.freq is None + assert taken.tz == expected.tz + assert taken.name == expected.name + + def test_take_fill_value(self): + # GH#12631 + idx = DatetimeIndex(["2011-01-01", "2011-02-01", "2011-03-01"], name="xxx") + result = idx.take(np.array([1, 0, -1])) + expected = DatetimeIndex(["2011-02-01", "2011-01-01", "2011-03-01"], name="xxx") + tm.assert_index_equal(result, expected) + + # fill_value + result = idx.take(np.array([1, 0, -1]), fill_value=True) + expected = DatetimeIndex(["2011-02-01", "2011-01-01", "NaT"], name="xxx") + tm.assert_index_equal(result, expected) + + # allow_fill=False + result = idx.take(np.array([1, 0, -1]), allow_fill=False, fill_value=True) + expected = DatetimeIndex(["2011-02-01", "2011-01-01", "2011-03-01"], name="xxx") + tm.assert_index_equal(result, expected) + + msg = ( + "When allow_fill=True and fill_value is not None, " + "all indices must be >= -1" + ) + with pytest.raises(ValueError, match=msg): + idx.take(np.array([1, 0, -2]), fill_value=True) + with pytest.raises(ValueError, match=msg): + idx.take(np.array([1, 0, -5]), fill_value=True) + + msg = "out of bounds" + with pytest.raises(IndexError, match=msg): + idx.take(np.array([1, -5])) + + def test_take_fill_value_with_timezone(self): + idx = DatetimeIndex( + ["2011-01-01", "2011-02-01", "2011-03-01"], name="xxx", tz="US/Eastern" + ) + result = idx.take(np.array([1, 0, -1])) + expected = DatetimeIndex( + ["2011-02-01", "2011-01-01", "2011-03-01"], name="xxx", tz="US/Eastern" + ) + tm.assert_index_equal(result, expected) + + # fill_value + result = idx.take(np.array([1, 0, -1]), fill_value=True) + expected = DatetimeIndex( + ["2011-02-01", "2011-01-01", "NaT"], name="xxx", tz="US/Eastern" + ) + tm.assert_index_equal(result, expected) + + # allow_fill=False + result = idx.take(np.array([1, 0, -1]), allow_fill=False, fill_value=True) + expected = DatetimeIndex( + ["2011-02-01", "2011-01-01", "2011-03-01"], name="xxx", tz="US/Eastern" + ) + tm.assert_index_equal(result, expected) + + msg = ( + "When allow_fill=True and fill_value is not None, " + "all indices must be >= -1" + ) + with pytest.raises(ValueError, match=msg): + idx.take(np.array([1, 0, -2]), fill_value=True) + with pytest.raises(ValueError, match=msg): + idx.take(np.array([1, 0, -5]), fill_value=True) + + msg = "out of bounds" + with pytest.raises(IndexError, match=msg): + idx.take(np.array([1, -5])) + + +class TestGetLoc: + def test_get_loc_key_unit_mismatch(self): + idx = date_range("2000-01-01", periods=3) + key = idx[1].as_unit("ms") + loc = idx.get_loc(key) + assert loc == 1 + assert key in idx + + def test_get_loc_key_unit_mismatch_not_castable(self): + dta = date_range("2000-01-01", periods=3)._data.astype("M8[s]") + dti = DatetimeIndex(dta) + key = dta[0].as_unit("ns") + pd.Timedelta(1) + + with pytest.raises( + KeyError, match=r"Timestamp\('2000-01-01 00:00:00.000000001'\)" + ): + dti.get_loc(key) + + assert key not in dti + + def test_get_loc_time_obj(self): + # time indexing + idx = date_range("2000-01-01", periods=24, freq="h") + + result = idx.get_loc(time(12)) + expected = np.array([12]) + tm.assert_numpy_array_equal(result, expected, check_dtype=False) + + result = idx.get_loc(time(12, 30)) + expected = np.array([]) + tm.assert_numpy_array_equal(result, expected, check_dtype=False) + + @pytest.mark.parametrize("offset", [-10, 10]) + def test_get_loc_time_obj2(self, monkeypatch, offset): + # GH#8667 + size_cutoff = 50 + n = size_cutoff + offset + key = time(15, 11, 30) + start = key.hour * 3600 + key.minute * 60 + key.second + step = 24 * 3600 + + with monkeypatch.context(): + monkeypatch.setattr(libindex, "_SIZE_CUTOFF", size_cutoff) + idx = date_range("2014-11-26", periods=n, freq="s") + ts = pd.Series(np.random.default_rng(2).standard_normal(n), index=idx) + locs = np.arange(start, n, step, dtype=np.intp) + + result = ts.index.get_loc(key) + tm.assert_numpy_array_equal(result, locs) + tm.assert_series_equal(ts[key], ts.iloc[locs]) + + left, right = ts.copy(), ts.copy() + left[key] *= -10 + right.iloc[locs] *= -10 + tm.assert_series_equal(left, right) + + def test_get_loc_time_nat(self): + # GH#35114 + # Case where key's total microseconds happens to match iNaT % 1e6 // 1000 + tic = time(minute=12, second=43, microsecond=145224) + dti = DatetimeIndex([pd.NaT]) + + loc = dti.get_loc(tic) + expected = np.array([], dtype=np.intp) + tm.assert_numpy_array_equal(loc, expected) + + def test_get_loc_nat(self): + # GH#20464 + index = DatetimeIndex(["1/3/2000", "NaT"]) + assert index.get_loc(pd.NaT) == 1 + + assert index.get_loc(None) == 1 + + assert index.get_loc(np.nan) == 1 + + assert index.get_loc(pd.NA) == 1 + + assert index.get_loc(np.datetime64("NaT")) == 1 + + with pytest.raises(KeyError, match="NaT"): + index.get_loc(np.timedelta64("NaT")) + + @pytest.mark.parametrize("key", [pd.Timedelta(0), pd.Timedelta(1), timedelta(0)]) + def test_get_loc_timedelta_invalid_key(self, key): + # GH#20464 + dti = date_range("1970-01-01", periods=10) + msg = "Cannot index DatetimeIndex with [Tt]imedelta" + with pytest.raises(TypeError, match=msg): + dti.get_loc(key) + + def test_get_loc_reasonable_key_error(self): + # GH#1062 + index = DatetimeIndex(["1/3/2000"]) + with pytest.raises(KeyError, match="2000"): + index.get_loc("1/1/2000") + + def test_get_loc_year_str(self): + rng = date_range("1/1/2000", "1/1/2010") + + result = rng.get_loc("2009") + expected = slice(3288, 3653) + assert result == expected + + +class TestContains: + def test_dti_contains_with_duplicates(self): + d = datetime(2011, 12, 5, 20, 30) + ix = DatetimeIndex([d, d]) + assert d in ix + + @pytest.mark.parametrize( + "vals", + [ + [0, 1, 0], + [0, 0, -1], + [0, -1, -1], + ["2015", "2015", "2016"], + ["2015", "2015", "2014"], + ], + ) + def test_contains_nonunique(self, vals): + # GH#9512 + idx = DatetimeIndex(vals) + assert idx[0] in idx + + +class TestGetIndexer: + def test_get_indexer_date_objs(self): + rng = date_range("1/1/2000", periods=20) + + result = rng.get_indexer(rng.map(lambda x: x.date())) + expected = rng.get_indexer(rng) + tm.assert_numpy_array_equal(result, expected) + + def test_get_indexer(self): + idx = date_range("2000-01-01", periods=3) + exp = np.array([0, 1, 2], dtype=np.intp) + tm.assert_numpy_array_equal(idx.get_indexer(idx), exp) + + target = idx[0] + pd.to_timedelta(["-1 hour", "12 hours", "1 day 1 hour"]) + tm.assert_numpy_array_equal( + idx.get_indexer(target, "pad"), np.array([-1, 0, 1], dtype=np.intp) + ) + tm.assert_numpy_array_equal( + idx.get_indexer(target, "backfill"), np.array([0, 1, 2], dtype=np.intp) + ) + tm.assert_numpy_array_equal( + idx.get_indexer(target, "nearest"), np.array([0, 1, 1], dtype=np.intp) + ) + tm.assert_numpy_array_equal( + idx.get_indexer(target, "nearest", tolerance=pd.Timedelta("1 hour")), + np.array([0, -1, 1], dtype=np.intp), + ) + tol_raw = [ + pd.Timedelta("1 hour"), + pd.Timedelta("1 hour"), + pd.Timedelta("1 hour").to_timedelta64(), + ] + tm.assert_numpy_array_equal( + idx.get_indexer( + target, "nearest", tolerance=[np.timedelta64(x) for x in tol_raw] + ), + np.array([0, -1, 1], dtype=np.intp), + ) + tol_bad = [ + pd.Timedelta("2 hour").to_timedelta64(), + pd.Timedelta("1 hour").to_timedelta64(), + "foo", + ] + msg = "Could not convert 'foo' to NumPy timedelta" + with pytest.raises(ValueError, match=msg): + idx.get_indexer(target, "nearest", tolerance=tol_bad) + with pytest.raises(ValueError, match="abbreviation w/o a number"): + idx.get_indexer(idx[[0]], method="nearest", tolerance="foo") + + @pytest.mark.parametrize( + "target", + [ + [date(2020, 1, 1), Timestamp("2020-01-02")], + [Timestamp("2020-01-01"), date(2020, 1, 2)], + ], + ) + def test_get_indexer_mixed_dtypes(self, target): + # https://github.com/pandas-dev/pandas/issues/33741 + values = DatetimeIndex([Timestamp("2020-01-01"), Timestamp("2020-01-02")]) + result = values.get_indexer(target) + expected = np.array([0, 1], dtype=np.intp) + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize( + "target, positions", + [ + ([date(9999, 1, 1), Timestamp("2020-01-01")], [-1, 0]), + ([Timestamp("2020-01-01"), date(9999, 1, 1)], [0, -1]), + ([date(9999, 1, 1), date(9999, 1, 1)], [-1, -1]), + ], + ) + def test_get_indexer_out_of_bounds_date(self, target, positions): + values = DatetimeIndex([Timestamp("2020-01-01"), Timestamp("2020-01-02")]) + + result = values.get_indexer(target) + expected = np.array(positions, dtype=np.intp) + tm.assert_numpy_array_equal(result, expected) + + def test_get_indexer_pad_requires_monotonicity(self): + rng = date_range("1/1/2000", "3/1/2000", freq="B") + + # neither monotonic increasing or decreasing + rng2 = rng[[1, 0, 2]] + + msg = "index must be monotonic increasing or decreasing" + with pytest.raises(ValueError, match=msg): + rng2.get_indexer(rng, method="pad") + + +class TestMaybeCastSliceBound: + def test_maybe_cast_slice_bounds_empty(self): + # GH#14354 + empty_idx = date_range(freq="1h", periods=0, end="2015") + + right = empty_idx._maybe_cast_slice_bound("2015-01-02", "right") + exp = Timestamp("2015-01-02 23:59:59.999999999") + assert right == exp + + left = empty_idx._maybe_cast_slice_bound("2015-01-02", "left") + exp = Timestamp("2015-01-02 00:00:00") + assert left == exp + + def test_maybe_cast_slice_duplicate_monotonic(self): + # https://github.com/pandas-dev/pandas/issues/16515 + idx = DatetimeIndex(["2017", "2017"]) + result = idx._maybe_cast_slice_bound("2017-01-01", "left") + expected = Timestamp("2017-01-01") + assert result == expected + + +class TestGetSliceBounds: + @pytest.mark.parametrize("box", [date, datetime, Timestamp]) + @pytest.mark.parametrize("side, expected", [("left", 4), ("right", 5)]) + def test_get_slice_bounds_datetime_within( + self, box, side, expected, tz_aware_fixture + ): + # GH 35690 + tz = tz_aware_fixture + index = bdate_range("2000-01-03", "2000-02-11").tz_localize(tz) + key = box(year=2000, month=1, day=7) + + if tz is not None: + with pytest.raises(TypeError, match="Cannot compare tz-naive"): + # GH#36148 we require tzawareness-compat as of 2.0 + index.get_slice_bound(key, side=side) + else: + result = index.get_slice_bound(key, side=side) + assert result == expected + + @pytest.mark.parametrize("box", [datetime, Timestamp]) + @pytest.mark.parametrize("side", ["left", "right"]) + @pytest.mark.parametrize("year, expected", [(1999, 0), (2020, 30)]) + def test_get_slice_bounds_datetime_outside( + self, box, side, year, expected, tz_aware_fixture + ): + # GH 35690 + tz = tz_aware_fixture + index = bdate_range("2000-01-03", "2000-02-11").tz_localize(tz) + key = box(year=year, month=1, day=7) + + if tz is not None: + with pytest.raises(TypeError, match="Cannot compare tz-naive"): + # GH#36148 we require tzawareness-compat as of 2.0 + index.get_slice_bound(key, side=side) + else: + result = index.get_slice_bound(key, side=side) + assert result == expected + + @pytest.mark.parametrize("box", [datetime, Timestamp]) + def test_slice_datetime_locs(self, box, tz_aware_fixture): + # GH 34077 + tz = tz_aware_fixture + index = DatetimeIndex(["2010-01-01", "2010-01-03"]).tz_localize(tz) + key = box(2010, 1, 1) + + if tz is not None: + with pytest.raises(TypeError, match="Cannot compare tz-naive"): + # GH#36148 we require tzawareness-compat as of 2.0 + index.slice_locs(key, box(2010, 1, 2)) + else: + result = index.slice_locs(key, box(2010, 1, 2)) + expected = (0, 1) + assert result == expected + + +class TestIndexerBetweenTime: + def test_indexer_between_time(self): + # GH#11818 + rng = date_range("1/1/2000", "1/5/2000", freq="5min") + msg = r"Cannot convert arg \[datetime\.datetime\(2010, 1, 2, 1, 0\)\] to a time" + with pytest.raises(ValueError, match=msg): + rng.indexer_between_time(datetime(2010, 1, 2, 1), datetime(2010, 1, 2, 5)) + + @pytest.mark.parametrize("unit", ["us", "ms", "s"]) + def test_indexer_between_time_non_nano(self, unit): + # For simple cases like this, the non-nano indexer_between_time + # should match the nano result + + rng = date_range("1/1/2000", "1/5/2000", freq="5min") + arr_nano = rng._data._ndarray + + arr = arr_nano.astype(f"M8[{unit}]") + + dta = type(rng._data)._simple_new(arr, dtype=arr.dtype) + dti = DatetimeIndex(dta) + assert dti.dtype == arr.dtype + + tic = time(1, 25) + toc = time(2, 29) + + result = dti.indexer_between_time(tic, toc) + expected = rng.indexer_between_time(tic, toc) + tm.assert_numpy_array_equal(result, expected) + + # case with non-zero micros in arguments + tic = time(1, 25, 0, 45678) + toc = time(2, 29, 0, 1234) + + result = dti.indexer_between_time(tic, toc) + expected = rng.indexer_between_time(tic, toc) + tm.assert_numpy_array_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_iter.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_iter.py new file mode 100644 index 0000000000000000000000000000000000000000..a006ed79f27baed75bedb95e6f24e948e429172e --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_iter.py @@ -0,0 +1,76 @@ +import dateutil.tz +import numpy as np +import pytest + +from pandas import ( + DatetimeIndex, + date_range, + to_datetime, +) +from pandas.core.arrays import datetimes + + +class TestDatetimeIndexIteration: + @pytest.mark.parametrize( + "tz", [None, "UTC", "US/Central", dateutil.tz.tzoffset(None, -28800)] + ) + def test_iteration_preserves_nanoseconds(self, tz): + # GH#19603 + index = DatetimeIndex( + ["2018-02-08 15:00:00.168456358", "2018-02-08 15:00:00.168456359"], tz=tz + ) + for i, ts in enumerate(index): + assert ts == index[i] # pylint: disable=unnecessary-list-index-lookup + + def test_iter_readonly(self): + # GH#28055 ints_to_pydatetime with readonly array + arr = np.array([np.datetime64("2012-02-15T12:00:00.000000000")]) + arr.setflags(write=False) + dti = to_datetime(arr) + list(dti) + + def test_iteration_preserves_tz(self): + # see GH#8890 + index = date_range("2012-01-01", periods=3, freq="h", tz="US/Eastern") + + for i, ts in enumerate(index): + result = ts + expected = index[i] # pylint: disable=unnecessary-list-index-lookup + assert result == expected + + def test_iteration_preserves_tz2(self): + index = date_range( + "2012-01-01", periods=3, freq="h", tz=dateutil.tz.tzoffset(None, -28800) + ) + + for i, ts in enumerate(index): + result = ts + expected = index[i] # pylint: disable=unnecessary-list-index-lookup + assert result._repr_base == expected._repr_base + assert result == expected + + def test_iteration_preserves_tz3(self): + # GH#9100 + index = DatetimeIndex( + ["2014-12-01 03:32:39.987000-08:00", "2014-12-01 04:12:34.987000-08:00"] + ) + for i, ts in enumerate(index): + result = ts + expected = index[i] # pylint: disable=unnecessary-list-index-lookup + assert result._repr_base == expected._repr_base + assert result == expected + + @pytest.mark.parametrize("offset", [-5, -1, 0, 1]) + def test_iteration_over_chunksize(self, offset, monkeypatch): + # GH#21012 + chunksize = 5 + index = date_range( + "2000-01-01 00:00:00", periods=chunksize - offset, freq="min" + ) + num = 0 + with monkeypatch.context() as m: + m.setattr(datetimes, "_ITER_CHUNKSIZE", chunksize) + for stamp in index: + assert index[num] == stamp + num += 1 + assert num == len(index) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_join.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_join.py new file mode 100644 index 0000000000000000000000000000000000000000..abf6809d67f9cd2178c45544186edc71bc7126b9 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_join.py @@ -0,0 +1,153 @@ +from datetime import ( + datetime, + timezone, +) + +import numpy as np +import pytest + +from pandas import ( + DataFrame, + DatetimeIndex, + Index, + Timestamp, + date_range, + period_range, + to_datetime, +) +import pandas._testing as tm + +from pandas.tseries.offsets import ( + BDay, + BMonthEnd, +) + + +class TestJoin: + def test_does_not_convert_mixed_integer(self): + df = DataFrame(np.ones((3, 2)), columns=date_range("2020-01-01", periods=2)) + cols = df.columns.join(df.index, how="outer") + joined = cols.join(df.columns) + assert cols.dtype == np.dtype("O") + assert cols.dtype == joined.dtype + tm.assert_numpy_array_equal(cols.values, joined.values) + + def test_join_self(self, join_type): + index = date_range("1/1/2000", periods=10) + joined = index.join(index, how=join_type) + assert index is joined + + def test_join_with_period_index(self, join_type): + df = DataFrame( + np.ones((10, 2)), + index=date_range("2020-01-01", periods=10), + columns=period_range("2020-01-01", periods=2), + ) + s = df.iloc[:5, 0] + + expected = df.columns.astype("O").join(s.index, how=join_type) + result = df.columns.join(s.index, how=join_type) + tm.assert_index_equal(expected, result) + + def test_join_object_index(self): + rng = date_range("1/1/2000", periods=10) + idx = Index(["a", "b", "c", "d"]) + + result = rng.join(idx, how="outer") + assert isinstance(result[0], Timestamp) + + def test_join_utc_convert(self, join_type): + rng = date_range("1/1/2011", periods=100, freq="h", tz="utc") + + left = rng.tz_convert("US/Eastern") + right = rng.tz_convert("Europe/Berlin") + + result = left.join(left[:-5], how=join_type) + assert isinstance(result, DatetimeIndex) + assert result.tz == left.tz + + result = left.join(right[:-5], how=join_type) + assert isinstance(result, DatetimeIndex) + assert result.tz is timezone.utc + + def test_datetimeindex_union_join_empty(self, sort, using_infer_string): + dti = date_range(start="1/1/2001", end="2/1/2001", freq="D") + empty = Index([]) + + result = dti.union(empty, sort=sort) + if using_infer_string: + assert isinstance(result, DatetimeIndex) + tm.assert_index_equal(result, dti) + else: + expected = dti.astype("O") + tm.assert_index_equal(result, expected) + + result = dti.join(empty) + assert isinstance(result, DatetimeIndex) + tm.assert_index_equal(result, dti) + + def test_join_nonunique(self): + idx1 = to_datetime(["2012-11-06 16:00:11.477563", "2012-11-06 16:00:11.477563"]) + idx2 = to_datetime(["2012-11-06 15:11:09.006507", "2012-11-06 15:11:09.006507"]) + rs = idx1.join(idx2, how="outer") + assert rs.is_monotonic_increasing + + @pytest.mark.parametrize("freq", ["B", "C"]) + def test_outer_join(self, freq): + # should just behave as union + start, end = datetime(2009, 1, 1), datetime(2010, 1, 1) + rng = date_range(start=start, end=end, freq=freq) + + # overlapping + left = rng[:10] + right = rng[5:10] + + the_join = left.join(right, how="outer") + assert isinstance(the_join, DatetimeIndex) + + # non-overlapping, gap in middle + left = rng[:5] + right = rng[10:] + + the_join = left.join(right, how="outer") + assert isinstance(the_join, DatetimeIndex) + assert the_join.freq is None + + # non-overlapping, no gap + left = rng[:5] + right = rng[5:10] + + the_join = left.join(right, how="outer") + assert isinstance(the_join, DatetimeIndex) + + # overlapping, but different offset + other = date_range(start, end, freq=BMonthEnd()) + + the_join = rng.join(other, how="outer") + assert isinstance(the_join, DatetimeIndex) + assert the_join.freq is None + + def test_naive_aware_conflicts(self): + start, end = datetime(2009, 1, 1), datetime(2010, 1, 1) + naive = date_range(start, end, freq=BDay(), tz=None) + aware = date_range(start, end, freq=BDay(), tz="Asia/Hong_Kong") + + msg = "tz-naive.*tz-aware" + with pytest.raises(TypeError, match=msg): + naive.join(aware) + + with pytest.raises(TypeError, match=msg): + aware.join(naive) + + @pytest.mark.parametrize("tz", [None, "US/Pacific"]) + def test_join_preserves_freq(self, tz): + # GH#32157 + dti = date_range("2016-01-01", periods=10, tz=tz) + result = dti[:5].join(dti[5:], how="outer") + assert result.freq == dti.freq + tm.assert_index_equal(result, dti) + + result = dti[:5].join(dti[6:], how="outer") + assert result.freq is None + expected = dti.delete(5) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_npfuncs.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_npfuncs.py new file mode 100644 index 0000000000000000000000000000000000000000..6c3e44c2a5db1ebc4f02686d19d34ae3caf1e9ad --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_npfuncs.py @@ -0,0 +1,13 @@ +import numpy as np + +from pandas import date_range +import pandas._testing as tm + + +class TestSplit: + def test_split_non_utc(self): + # GH#14042 + indices = date_range("2016-01-01 00:00:00+0200", freq="s", periods=10) + result = np.split(indices, indices_or_sections=[])[0] + expected = indices._with_freq(None) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_ops.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_ops.py new file mode 100644 index 0000000000000000000000000000000000000000..bac9548b932c163dc7a33282796c1bb682187664 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_ops.py @@ -0,0 +1,56 @@ +from datetime import datetime + +import pytest + +from pandas import ( + DatetimeIndex, + Index, + bdate_range, + date_range, +) +import pandas._testing as tm + + +class TestDatetimeIndexOps: + def test_infer_freq(self, freq_sample): + # GH 11018 + idx = date_range("2011-01-01 09:00:00", freq=freq_sample, periods=10) + result = DatetimeIndex(idx.asi8, freq="infer") + tm.assert_index_equal(idx, result) + assert result.freq == freq_sample + + +@pytest.mark.parametrize("freq", ["B", "C"]) +class TestBusinessDatetimeIndex: + @pytest.fixture + def rng(self, freq): + START, END = datetime(2009, 1, 1), datetime(2010, 1, 1) + return bdate_range(START, END, freq=freq) + + def test_comparison(self, rng): + d = rng[10] + + comp = rng > d + assert comp[11] + assert not comp[9] + + def test_copy(self, rng): + cp = rng.copy() + tm.assert_index_equal(cp, rng) + + def test_identical(self, rng): + t1 = rng.copy() + t2 = rng.copy() + assert t1.identical(t2) + + # name + t1 = t1.rename("foo") + assert t1.equals(t2) + assert not t1.identical(t2) + t2 = t2.rename("foo") + assert t1.identical(t2) + + # freq + t2v = Index(t2.values) + assert t1.equals(t2v) + assert not t1.identical(t2v) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_partial_slicing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_partial_slicing.py new file mode 100644 index 0000000000000000000000000000000000000000..8b493fc61cb5873532e2e8393007533ee6cb8e4f --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_partial_slicing.py @@ -0,0 +1,466 @@ +""" test partial slicing on Series/Frame """ + +from datetime import datetime + +import numpy as np +import pytest + +from pandas import ( + DataFrame, + DatetimeIndex, + Index, + MultiIndex, + Series, + Timedelta, + Timestamp, + date_range, +) +import pandas._testing as tm + + +class TestSlicing: + def test_string_index_series_name_converted(self): + # GH#1644 + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 4)), + index=date_range("1/1/2000", periods=10), + ) + + result = df.loc["1/3/2000"] + assert result.name == df.index[2] + + result = df.T["1/3/2000"] + assert result.name == df.index[2] + + def test_stringified_slice_with_tz(self): + # GH#2658 + start = "2013-01-07" + idx = date_range(start=start, freq="1d", periods=10, tz="US/Eastern") + df = DataFrame(np.arange(10), index=idx) + df["2013-01-14 23:44:34.437768-05:00":] # no exception here + + def test_return_type_doesnt_depend_on_monotonicity(self): + # GH#24892 we get Series back regardless of whether our DTI is monotonic + dti = date_range(start="2015-5-13 23:59:00", freq="min", periods=3) + ser = Series(range(3), index=dti) + + # non-monotonic index + ser2 = Series(range(3), index=[dti[1], dti[0], dti[2]]) + + # key with resolution strictly lower than "min" + key = "2015-5-14 00" + + # monotonic increasing index + result = ser.loc[key] + expected = ser.iloc[1:] + tm.assert_series_equal(result, expected) + + # monotonic decreasing index + result = ser.iloc[::-1].loc[key] + expected = ser.iloc[::-1][:-1] + tm.assert_series_equal(result, expected) + + # non-monotonic index + result2 = ser2.loc[key] + expected2 = ser2.iloc[::2] + tm.assert_series_equal(result2, expected2) + + def test_return_type_doesnt_depend_on_monotonicity_higher_reso(self): + # GH#24892 we get Series back regardless of whether our DTI is monotonic + dti = date_range(start="2015-5-13 23:59:00", freq="min", periods=3) + ser = Series(range(3), index=dti) + + # non-monotonic index + ser2 = Series(range(3), index=[dti[1], dti[0], dti[2]]) + + # key with resolution strictly *higher) than "min" + key = "2015-5-14 00:00:00" + + # monotonic increasing index + result = ser.loc[key] + assert result == 1 + + # monotonic decreasing index + result = ser.iloc[::-1].loc[key] + assert result == 1 + + # non-monotonic index + result2 = ser2.loc[key] + assert result2 == 0 + + def test_monotone_DTI_indexing_bug(self): + # GH 19362 + # Testing accessing the first element in a monotonic descending + # partial string indexing. + + df = DataFrame(list(range(5))) + date_list = [ + "2018-01-02", + "2017-02-10", + "2016-03-10", + "2015-03-15", + "2014-03-16", + ] + date_index = DatetimeIndex(date_list) + df["date"] = date_index + expected = DataFrame({0: list(range(5)), "date": date_index}) + tm.assert_frame_equal(df, expected) + + # We get a slice because df.index's resolution is hourly and we + # are slicing with a daily-resolution string. If both were daily, + # we would get a single item back + dti = date_range("20170101 01:00:00", periods=3) + df = DataFrame({"A": [1, 2, 3]}, index=dti[::-1]) + + expected = DataFrame({"A": 1}, index=dti[-1:][::-1]) + result = df.loc["2017-01-03"] + tm.assert_frame_equal(result, expected) + + result2 = df.iloc[::-1].loc["2017-01-03"] + expected2 = expected.iloc[::-1] + tm.assert_frame_equal(result2, expected2) + + def test_slice_year(self): + dti = date_range(freq="B", start=datetime(2005, 1, 1), periods=500) + + s = Series(np.arange(len(dti)), index=dti) + result = s["2005"] + expected = s[s.index.year == 2005] + tm.assert_series_equal(result, expected) + + df = DataFrame(np.random.default_rng(2).random((len(dti), 5)), index=dti) + result = df.loc["2005"] + expected = df[df.index.year == 2005] + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "partial_dtime", + [ + "2019", + "2019Q4", + "Dec 2019", + "2019-12-31", + "2019-12-31 23", + "2019-12-31 23:59", + ], + ) + def test_slice_end_of_period_resolution(self, partial_dtime): + # GH#31064 + dti = date_range("2019-12-31 23:59:55.999999999", periods=10, freq="s") + + ser = Series(range(10), index=dti) + result = ser[partial_dtime] + expected = ser.iloc[:5] + tm.assert_series_equal(result, expected) + + def test_slice_quarter(self): + dti = date_range(freq="D", start=datetime(2000, 6, 1), periods=500) + + s = Series(np.arange(len(dti)), index=dti) + assert len(s["2001Q1"]) == 90 + + df = DataFrame(np.random.default_rng(2).random((len(dti), 5)), index=dti) + assert len(df.loc["1Q01"]) == 90 + + def test_slice_month(self): + dti = date_range(freq="D", start=datetime(2005, 1, 1), periods=500) + s = Series(np.arange(len(dti)), index=dti) + assert len(s["2005-11"]) == 30 + + df = DataFrame(np.random.default_rng(2).random((len(dti), 5)), index=dti) + assert len(df.loc["2005-11"]) == 30 + + tm.assert_series_equal(s["2005-11"], s["11-2005"]) + + def test_partial_slice(self): + rng = date_range(freq="D", start=datetime(2005, 1, 1), periods=500) + s = Series(np.arange(len(rng)), index=rng) + + result = s["2005-05":"2006-02"] + expected = s["20050501":"20060228"] + tm.assert_series_equal(result, expected) + + result = s["2005-05":] + expected = s["20050501":] + tm.assert_series_equal(result, expected) + + result = s[:"2006-02"] + expected = s[:"20060228"] + tm.assert_series_equal(result, expected) + + result = s["2005-1-1"] + assert result == s.iloc[0] + + with pytest.raises(KeyError, match=r"^'2004-12-31'$"): + s["2004-12-31"] + + def test_partial_slice_daily(self): + rng = date_range(freq="h", start=datetime(2005, 1, 31), periods=500) + s = Series(np.arange(len(rng)), index=rng) + + result = s["2005-1-31"] + tm.assert_series_equal(result, s.iloc[:24]) + + with pytest.raises(KeyError, match=r"^'2004-12-31 00'$"): + s["2004-12-31 00"] + + def test_partial_slice_hourly(self): + rng = date_range(freq="min", start=datetime(2005, 1, 1, 20, 0, 0), periods=500) + s = Series(np.arange(len(rng)), index=rng) + + result = s["2005-1-1"] + tm.assert_series_equal(result, s.iloc[: 60 * 4]) + + result = s["2005-1-1 20"] + tm.assert_series_equal(result, s.iloc[:60]) + + assert s["2005-1-1 20:00"] == s.iloc[0] + with pytest.raises(KeyError, match=r"^'2004-12-31 00:15'$"): + s["2004-12-31 00:15"] + + def test_partial_slice_minutely(self): + rng = date_range(freq="s", start=datetime(2005, 1, 1, 23, 59, 0), periods=500) + s = Series(np.arange(len(rng)), index=rng) + + result = s["2005-1-1 23:59"] + tm.assert_series_equal(result, s.iloc[:60]) + + result = s["2005-1-1"] + tm.assert_series_equal(result, s.iloc[:60]) + + assert s[Timestamp("2005-1-1 23:59:00")] == s.iloc[0] + with pytest.raises(KeyError, match=r"^'2004-12-31 00:00:00'$"): + s["2004-12-31 00:00:00"] + + def test_partial_slice_second_precision(self): + rng = date_range( + start=datetime(2005, 1, 1, 0, 0, 59, microsecond=999990), + periods=20, + freq="us", + ) + s = Series(np.arange(20), rng) + + tm.assert_series_equal(s["2005-1-1 00:00"], s.iloc[:10]) + tm.assert_series_equal(s["2005-1-1 00:00:59"], s.iloc[:10]) + + tm.assert_series_equal(s["2005-1-1 00:01"], s.iloc[10:]) + tm.assert_series_equal(s["2005-1-1 00:01:00"], s.iloc[10:]) + + assert s[Timestamp("2005-1-1 00:00:59.999990")] == s.iloc[0] + with pytest.raises(KeyError, match="2005-1-1 00:00:00"): + s["2005-1-1 00:00:00"] + + def test_partial_slicing_dataframe(self): + # GH14856 + # Test various combinations of string slicing resolution vs. + # index resolution + # - If string resolution is less precise than index resolution, + # string is considered a slice + # - If string resolution is equal to or more precise than index + # resolution, string is considered an exact match + formats = [ + "%Y", + "%Y-%m", + "%Y-%m-%d", + "%Y-%m-%d %H", + "%Y-%m-%d %H:%M", + "%Y-%m-%d %H:%M:%S", + ] + resolutions = ["year", "month", "day", "hour", "minute", "second"] + for rnum, resolution in enumerate(resolutions[2:], 2): + # we check only 'day', 'hour', 'minute' and 'second' + unit = Timedelta("1 " + resolution) + middate = datetime(2012, 1, 1, 0, 0, 0) + index = DatetimeIndex([middate - unit, middate, middate + unit]) + values = [1, 2, 3] + df = DataFrame({"a": values}, index, dtype=np.int64) + assert df.index.resolution == resolution + + # Timestamp with the same resolution as index + # Should be exact match for Series (return scalar) + # and raise KeyError for Frame + for timestamp, expected in zip(index, values): + ts_string = timestamp.strftime(formats[rnum]) + # make ts_string as precise as index + result = df["a"][ts_string] + assert isinstance(result, np.int64) + assert result == expected + msg = rf"^'{ts_string}'$" + with pytest.raises(KeyError, match=msg): + df[ts_string] + + # Timestamp with resolution less precise than index + for fmt in formats[:rnum]: + for element, theslice in [[0, slice(None, 1)], [1, slice(1, None)]]: + ts_string = index[element].strftime(fmt) + + # Series should return slice + result = df["a"][ts_string] + expected = df["a"][theslice] + tm.assert_series_equal(result, expected) + + # pre-2.0 df[ts_string] was overloaded to interpret this + # as slicing along index + with pytest.raises(KeyError, match=ts_string): + df[ts_string] + + # Timestamp with resolution more precise than index + # Compatible with existing key + # Should return scalar for Series + # and raise KeyError for Frame + for fmt in formats[rnum + 1 :]: + ts_string = index[1].strftime(fmt) + result = df["a"][ts_string] + assert isinstance(result, np.int64) + assert result == 2 + msg = rf"^'{ts_string}'$" + with pytest.raises(KeyError, match=msg): + df[ts_string] + + # Not compatible with existing key + # Should raise KeyError + for fmt, res in list(zip(formats, resolutions))[rnum + 1 :]: + ts = index[1] + Timedelta("1 " + res) + ts_string = ts.strftime(fmt) + msg = rf"^'{ts_string}'$" + with pytest.raises(KeyError, match=msg): + df["a"][ts_string] + with pytest.raises(KeyError, match=msg): + df[ts_string] + + def test_partial_slicing_with_multiindex(self): + # GH 4758 + # partial string indexing with a multi-index buggy + df = DataFrame( + { + "ACCOUNT": ["ACCT1", "ACCT1", "ACCT1", "ACCT2"], + "TICKER": ["ABC", "MNP", "XYZ", "XYZ"], + "val": [1, 2, 3, 4], + }, + index=date_range("2013-06-19 09:30:00", periods=4, freq="5min"), + ) + df_multi = df.set_index(["ACCOUNT", "TICKER"], append=True) + + expected = DataFrame( + [[1]], index=Index(["ABC"], name="TICKER"), columns=["val"] + ) + result = df_multi.loc[("2013-06-19 09:30:00", "ACCT1")] + tm.assert_frame_equal(result, expected) + + expected = df_multi.loc[ + (Timestamp("2013-06-19 09:30:00", tz=None), "ACCT1", "ABC") + ] + result = df_multi.loc[("2013-06-19 09:30:00", "ACCT1", "ABC")] + tm.assert_series_equal(result, expected) + + # partial string indexing on first level, scalar indexing on the other two + result = df_multi.loc[("2013-06-19", "ACCT1", "ABC")] + expected = df_multi.iloc[:1].droplevel([1, 2]) + tm.assert_frame_equal(result, expected) + + def test_partial_slicing_with_multiindex_series(self): + # GH 4294 + # partial slice on a series mi + ser = Series( + range(250), + index=MultiIndex.from_product( + [date_range("2000-1-1", periods=50), range(5)] + ), + ) + + s2 = ser[:-1].copy() + expected = s2["2000-1-4"] + result = s2[Timestamp("2000-1-4")] + tm.assert_series_equal(result, expected) + + result = ser[Timestamp("2000-1-4")] + expected = ser["2000-1-4"] + tm.assert_series_equal(result, expected) + + df2 = DataFrame(ser) + expected = df2.xs("2000-1-4") + result = df2.loc[Timestamp("2000-1-4")] + tm.assert_frame_equal(result, expected) + + def test_partial_slice_requires_monotonicity(self): + # Disallowed since 2.0 (GH 37819) + ser = Series(np.arange(10), date_range("2014-01-01", periods=10)) + + nonmonotonic = ser.iloc[[3, 5, 4]] + timestamp = Timestamp("2014-01-10") + with pytest.raises( + KeyError, match="Value based partial slicing on non-monotonic" + ): + nonmonotonic["2014-01-10":] + + with pytest.raises(KeyError, match=r"Timestamp\('2014-01-10 00:00:00'\)"): + nonmonotonic[timestamp:] + + with pytest.raises( + KeyError, match="Value based partial slicing on non-monotonic" + ): + nonmonotonic.loc["2014-01-10":] + + with pytest.raises(KeyError, match=r"Timestamp\('2014-01-10 00:00:00'\)"): + nonmonotonic.loc[timestamp:] + + def test_loc_datetime_length_one(self): + # GH16071 + df = DataFrame( + columns=["1"], + index=date_range("2016-10-01T00:00:00", "2016-10-01T23:59:59"), + ) + result = df.loc[datetime(2016, 10, 1) :] + tm.assert_frame_equal(result, df) + + result = df.loc["2016-10-01T00:00:00":] + tm.assert_frame_equal(result, df) + + @pytest.mark.parametrize( + "start", + [ + "2018-12-02 21:50:00+00:00", + Timestamp("2018-12-02 21:50:00+00:00"), + Timestamp("2018-12-02 21:50:00+00:00").to_pydatetime(), + ], + ) + @pytest.mark.parametrize( + "end", + [ + "2018-12-02 21:52:00+00:00", + Timestamp("2018-12-02 21:52:00+00:00"), + Timestamp("2018-12-02 21:52:00+00:00").to_pydatetime(), + ], + ) + def test_getitem_with_datestring_with_UTC_offset(self, start, end): + # GH 24076 + idx = date_range( + start="2018-12-02 14:50:00-07:00", + end="2018-12-02 14:50:00-07:00", + freq="1min", + ) + df = DataFrame(1, index=idx, columns=["A"]) + result = df[start:end] + expected = df.iloc[0:3, :] + tm.assert_frame_equal(result, expected) + + # GH 16785 + start = str(start) + end = str(end) + with pytest.raises(ValueError, match="Both dates must"): + df[start : end[:-4] + "1:00"] + + with pytest.raises(ValueError, match="The index must be timezone"): + df = df.tz_localize(None) + df[start:end] + + def test_slice_reduce_to_series(self): + # GH 27516 + df = DataFrame( + {"A": range(24)}, index=date_range("2000", periods=24, freq="ME") + ) + expected = Series( + range(12), index=date_range("2000", periods=12, freq="ME"), name="A" + ) + result = df.loc["2000", "A"] + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_pickle.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_pickle.py new file mode 100644 index 0000000000000000000000000000000000000000..922b4a18119f4d457de501225611f8884689d434 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_pickle.py @@ -0,0 +1,45 @@ +import pytest + +from pandas import ( + NaT, + date_range, + to_datetime, +) +import pandas._testing as tm + + +class TestPickle: + def test_pickle(self): + # GH#4606 + idx = to_datetime(["2013-01-01", NaT, "2014-01-06"]) + idx_p = tm.round_trip_pickle(idx) + assert idx_p[0] == idx[0] + assert idx_p[1] is NaT + assert idx_p[2] == idx[2] + + def test_pickle_dont_infer_freq(self): + # GH#11002 + # don't infer freq + idx = date_range("1750-1-1", "2050-1-1", freq="7D") + idx_p = tm.round_trip_pickle(idx) + tm.assert_index_equal(idx, idx_p) + + def test_pickle_after_set_freq(self): + dti = date_range("20130101", periods=3, tz="US/Eastern", name="foo") + dti = dti._with_freq(None) + + res = tm.round_trip_pickle(dti) + tm.assert_index_equal(res, dti) + + def test_roundtrip_pickle_with_tz(self): + # GH#8367 + # round-trip of timezone + index = date_range("20130101", periods=3, tz="US/Eastern", name="foo") + unpickled = tm.round_trip_pickle(index) + tm.assert_index_equal(index, unpickled) + + @pytest.mark.parametrize("freq", ["B", "C"]) + def test_pickle_unpickle(self, freq): + rng = date_range("2009-01-01", "2010-01-01", freq=freq) + unpickled = tm.round_trip_pickle(rng) + assert unpickled.freq == freq diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_reindex.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_reindex.py new file mode 100644 index 0000000000000000000000000000000000000000..e4911aa3c4a2938cedb70887b6bd3f28e408f8c5 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_reindex.py @@ -0,0 +1,56 @@ +from datetime import timedelta + +import numpy as np + +from pandas import ( + DatetimeIndex, + date_range, +) +import pandas._testing as tm + + +class TestDatetimeIndexReindex: + def test_reindex_preserves_tz_if_target_is_empty_list_or_array(self): + # GH#7774 + index = date_range("2013-01-01", periods=3, tz="US/Eastern") + assert str(index.reindex([])[0].tz) == "US/Eastern" + assert str(index.reindex(np.array([]))[0].tz) == "US/Eastern" + + def test_reindex_with_same_tz_nearest(self): + # GH#32740 + rng_a = date_range("2010-01-01", "2010-01-02", periods=24, tz="utc") + rng_b = date_range("2010-01-01", "2010-01-02", periods=23, tz="utc") + result1, result2 = rng_a.reindex( + rng_b, method="nearest", tolerance=timedelta(seconds=20) + ) + expected_list1 = [ + "2010-01-01 00:00:00", + "2010-01-01 01:05:27.272727272", + "2010-01-01 02:10:54.545454545", + "2010-01-01 03:16:21.818181818", + "2010-01-01 04:21:49.090909090", + "2010-01-01 05:27:16.363636363", + "2010-01-01 06:32:43.636363636", + "2010-01-01 07:38:10.909090909", + "2010-01-01 08:43:38.181818181", + "2010-01-01 09:49:05.454545454", + "2010-01-01 10:54:32.727272727", + "2010-01-01 12:00:00", + "2010-01-01 13:05:27.272727272", + "2010-01-01 14:10:54.545454545", + "2010-01-01 15:16:21.818181818", + "2010-01-01 16:21:49.090909090", + "2010-01-01 17:27:16.363636363", + "2010-01-01 18:32:43.636363636", + "2010-01-01 19:38:10.909090909", + "2010-01-01 20:43:38.181818181", + "2010-01-01 21:49:05.454545454", + "2010-01-01 22:54:32.727272727", + "2010-01-02 00:00:00", + ] + expected1 = DatetimeIndex( + expected_list1, dtype="datetime64[ns, UTC]", freq=None + ) + expected2 = np.array([0] + [-1] * 21 + [23], dtype=np.dtype("intp")) + tm.assert_index_equal(result1, expected1) + tm.assert_numpy_array_equal(result2, expected2) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_scalar_compat.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_scalar_compat.py new file mode 100644 index 0000000000000000000000000000000000000000..e93fc0e2a4e2e740e2dee27e332b68b060ba7aa7 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_scalar_compat.py @@ -0,0 +1,329 @@ +""" +Tests for DatetimeIndex methods behaving like their Timestamp counterparts +""" + +import calendar +from datetime import ( + date, + datetime, + time, +) +import locale +import unicodedata + +import numpy as np +import pytest + +from pandas._libs.tslibs import timezones + +from pandas import ( + DatetimeIndex, + Index, + NaT, + Timestamp, + date_range, + offsets, +) +import pandas._testing as tm +from pandas.core.arrays import DatetimeArray + + +class TestDatetimeIndexOps: + def test_dti_no_millisecond_field(self): + msg = "type object 'DatetimeIndex' has no attribute 'millisecond'" + with pytest.raises(AttributeError, match=msg): + DatetimeIndex.millisecond + + msg = "'DatetimeIndex' object has no attribute 'millisecond'" + with pytest.raises(AttributeError, match=msg): + DatetimeIndex([]).millisecond + + def test_dti_time(self): + rng = date_range("1/1/2000", freq="12min", periods=10) + result = Index(rng).time + expected = [t.time() for t in rng] + assert (result == expected).all() + + def test_dti_date(self): + rng = date_range("1/1/2000", freq="12h", periods=10) + result = Index(rng).date + expected = [t.date() for t in rng] + assert (result == expected).all() + + @pytest.mark.parametrize( + "dtype", + [None, "datetime64[ns, CET]", "datetime64[ns, EST]", "datetime64[ns, UTC]"], + ) + def test_dti_date2(self, dtype): + # Regression test for GH#21230 + expected = np.array([date(2018, 6, 4), NaT]) + + index = DatetimeIndex(["2018-06-04 10:00:00", NaT], dtype=dtype) + result = index.date + + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize( + "dtype", + [None, "datetime64[ns, CET]", "datetime64[ns, EST]", "datetime64[ns, UTC]"], + ) + def test_dti_time2(self, dtype): + # Regression test for GH#21267 + expected = np.array([time(10, 20, 30), NaT]) + + index = DatetimeIndex(["2018-06-04 10:20:30", NaT], dtype=dtype) + result = index.time + + tm.assert_numpy_array_equal(result, expected) + + def test_dti_timetz(self, tz_naive_fixture): + # GH#21358 + tz = timezones.maybe_get_tz(tz_naive_fixture) + + expected = np.array([time(10, 20, 30, tzinfo=tz), NaT]) + + index = DatetimeIndex(["2018-06-04 10:20:30", NaT], tz=tz) + result = index.timetz + + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize( + "field", + [ + "dayofweek", + "day_of_week", + "dayofyear", + "day_of_year", + "quarter", + "days_in_month", + "is_month_start", + "is_month_end", + "is_quarter_start", + "is_quarter_end", + "is_year_start", + "is_year_end", + ], + ) + def test_dti_timestamp_fields(self, field): + # extra fields from DatetimeIndex like quarter and week + idx = date_range("2020-01-01", periods=10) + expected = getattr(idx, field)[-1] + + result = getattr(Timestamp(idx[-1]), field) + assert result == expected + + def test_dti_nanosecond(self): + dti = DatetimeIndex(np.arange(10)) + expected = Index(np.arange(10, dtype=np.int32)) + + tm.assert_index_equal(dti.nanosecond, expected) + + @pytest.mark.parametrize("prefix", ["", "dateutil/"]) + def test_dti_hour_tzaware(self, prefix): + strdates = ["1/1/2012", "3/1/2012", "4/1/2012"] + rng = DatetimeIndex(strdates, tz=prefix + "US/Eastern") + assert (rng.hour == 0).all() + + # a more unusual time zone, GH#1946 + dr = date_range( + "2011-10-02 00:00", freq="h", periods=10, tz=prefix + "America/Atikokan" + ) + + expected = Index(np.arange(10, dtype=np.int32)) + tm.assert_index_equal(dr.hour, expected) + + # GH#12806 + # error: Unsupported operand types for + ("List[None]" and "List[str]") + @pytest.mark.parametrize( + "time_locale", [None] + tm.get_locales() # type: ignore[operator] + ) + def test_day_name_month_name(self, time_locale): + # Test Monday -> Sunday and January -> December, in that sequence + if time_locale is None: + # If the time_locale is None, day-name and month_name should + # return the english attributes + expected_days = [ + "Monday", + "Tuesday", + "Wednesday", + "Thursday", + "Friday", + "Saturday", + "Sunday", + ] + expected_months = [ + "January", + "February", + "March", + "April", + "May", + "June", + "July", + "August", + "September", + "October", + "November", + "December", + ] + else: + with tm.set_locale(time_locale, locale.LC_TIME): + expected_days = calendar.day_name[:] + expected_months = calendar.month_name[1:] + + # GH#11128 + dti = date_range(freq="D", start=datetime(1998, 1, 1), periods=365) + english_days = [ + "Monday", + "Tuesday", + "Wednesday", + "Thursday", + "Friday", + "Saturday", + "Sunday", + ] + for day, name, eng_name in zip(range(4, 11), expected_days, english_days): + name = name.capitalize() + assert dti.day_name(locale=time_locale)[day] == name + assert dti.day_name(locale=None)[day] == eng_name + ts = Timestamp(datetime(2016, 4, day)) + assert ts.day_name(locale=time_locale) == name + dti = dti.append(DatetimeIndex([NaT])) + assert np.isnan(dti.day_name(locale=time_locale)[-1]) + ts = Timestamp(NaT) + assert np.isnan(ts.day_name(locale=time_locale)) + + # GH#12805 + dti = date_range(freq="ME", start="2012", end="2013") + result = dti.month_name(locale=time_locale) + expected = Index([month.capitalize() for month in expected_months]) + + # work around different normalization schemes GH#22342 + result = result.str.normalize("NFD") + expected = expected.str.normalize("NFD") + + tm.assert_index_equal(result, expected) + + for item, expected in zip(dti, expected_months): + result = item.month_name(locale=time_locale) + expected = expected.capitalize() + + result = unicodedata.normalize("NFD", result) + expected = unicodedata.normalize("NFD", result) + + assert result == expected + dti = dti.append(DatetimeIndex([NaT])) + assert np.isnan(dti.month_name(locale=time_locale)[-1]) + + def test_dti_week(self): + # GH#6538: Check that DatetimeIndex and its TimeStamp elements + # return the same weekofyear accessor close to new year w/ tz + dates = ["2013/12/29", "2013/12/30", "2013/12/31"] + dates = DatetimeIndex(dates, tz="Europe/Brussels") + expected = [52, 1, 1] + assert dates.isocalendar().week.tolist() == expected + assert [d.weekofyear for d in dates] == expected + + @pytest.mark.parametrize("tz", [None, "US/Eastern"]) + def test_dti_fields(self, tz): + # GH#13303 + dti = date_range(freq="D", start=datetime(1998, 1, 1), periods=365, tz=tz) + assert dti.year[0] == 1998 + assert dti.month[0] == 1 + assert dti.day[0] == 1 + assert dti.hour[0] == 0 + assert dti.minute[0] == 0 + assert dti.second[0] == 0 + assert dti.microsecond[0] == 0 + assert dti.dayofweek[0] == 3 + + assert dti.dayofyear[0] == 1 + assert dti.dayofyear[120] == 121 + + assert dti.isocalendar().week.iloc[0] == 1 + assert dti.isocalendar().week.iloc[120] == 18 + + assert dti.quarter[0] == 1 + assert dti.quarter[120] == 2 + + assert dti.days_in_month[0] == 31 + assert dti.days_in_month[90] == 30 + + assert dti.is_month_start[0] + assert not dti.is_month_start[1] + assert dti.is_month_start[31] + assert dti.is_quarter_start[0] + assert dti.is_quarter_start[90] + assert dti.is_year_start[0] + assert not dti.is_year_start[364] + assert not dti.is_month_end[0] + assert dti.is_month_end[30] + assert not dti.is_month_end[31] + assert dti.is_month_end[364] + assert not dti.is_quarter_end[0] + assert not dti.is_quarter_end[30] + assert dti.is_quarter_end[89] + assert dti.is_quarter_end[364] + assert not dti.is_year_end[0] + assert dti.is_year_end[364] + + assert len(dti.year) == 365 + assert len(dti.month) == 365 + assert len(dti.day) == 365 + assert len(dti.hour) == 365 + assert len(dti.minute) == 365 + assert len(dti.second) == 365 + assert len(dti.microsecond) == 365 + assert len(dti.dayofweek) == 365 + assert len(dti.dayofyear) == 365 + assert len(dti.isocalendar()) == 365 + assert len(dti.quarter) == 365 + assert len(dti.is_month_start) == 365 + assert len(dti.is_month_end) == 365 + assert len(dti.is_quarter_start) == 365 + assert len(dti.is_quarter_end) == 365 + assert len(dti.is_year_start) == 365 + assert len(dti.is_year_end) == 365 + + dti.name = "name" + + # non boolean accessors -> return Index + for accessor in DatetimeArray._field_ops: + res = getattr(dti, accessor) + assert len(res) == 365 + assert isinstance(res, Index) + assert res.name == "name" + + # boolean accessors -> return array + for accessor in DatetimeArray._bool_ops: + res = getattr(dti, accessor) + assert len(res) == 365 + assert isinstance(res, np.ndarray) + + # test boolean indexing + res = dti[dti.is_quarter_start] + exp = dti[[0, 90, 181, 273]] + tm.assert_index_equal(res, exp) + res = dti[dti.is_leap_year] + exp = DatetimeIndex([], freq="D", tz=dti.tz, name="name").as_unit("ns") + tm.assert_index_equal(res, exp) + + def test_dti_is_year_quarter_start(self): + dti = date_range(freq="BQE-FEB", start=datetime(1998, 1, 1), periods=4) + + assert sum(dti.is_quarter_start) == 0 + assert sum(dti.is_quarter_end) == 4 + assert sum(dti.is_year_start) == 0 + assert sum(dti.is_year_end) == 1 + + def test_dti_is_month_start(self): + dti = DatetimeIndex(["2000-01-01", "2000-01-02", "2000-01-03"]) + + assert dti.is_month_start[0] == 1 + + def test_dti_is_month_start_custom(self): + # Ensure is_start/end accessors throw ValueError for CustomBusinessDay, + bday_egypt = offsets.CustomBusinessDay(weekmask="Sun Mon Tue Wed Thu") + dti = date_range(datetime(2013, 4, 30), periods=5, freq=bday_egypt) + msg = "Custom business days is not supported by is_month_start" + with pytest.raises(ValueError, match=msg): + dti.is_month_start diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_setops.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_setops.py new file mode 100644 index 0000000000000000000000000000000000000000..fc3a1d4721841a052c19071883653a48c835c3b2 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_setops.py @@ -0,0 +1,666 @@ +from datetime import ( + datetime, + timezone, +) + +import numpy as np +import pytest +import pytz + +import pandas.util._test_decorators as td + +import pandas as pd +from pandas import ( + DataFrame, + DatetimeIndex, + Index, + Series, + Timestamp, + bdate_range, + date_range, +) +import pandas._testing as tm + +from pandas.tseries.offsets import ( + BMonthEnd, + Minute, + MonthEnd, +) + +START, END = datetime(2009, 1, 1), datetime(2010, 1, 1) + + +class TestDatetimeIndexSetOps: + tz = [ + None, + "UTC", + "Asia/Tokyo", + "US/Eastern", + "dateutil/Asia/Singapore", + "dateutil/US/Pacific", + ] + + # TODO: moved from test_datetimelike; dedup with version below + def test_union2(self, sort): + everything = date_range("2020-01-01", periods=10) + first = everything[:5] + second = everything[5:] + union = first.union(second, sort=sort) + tm.assert_index_equal(union, everything) + + @pytest.mark.parametrize("box", [np.array, Series, list]) + def test_union3(self, sort, box): + everything = date_range("2020-01-01", periods=10) + first = everything[:5] + second = everything[5:] + + # GH 10149 support listlike inputs other than Index objects + expected = first.union(second, sort=sort) + case = box(second.values) + result = first.union(case, sort=sort) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("tz", tz) + def test_union(self, tz, sort): + rng1 = date_range("1/1/2000", freq="D", periods=5, tz=tz) + other1 = date_range("1/6/2000", freq="D", periods=5, tz=tz) + expected1 = date_range("1/1/2000", freq="D", periods=10, tz=tz) + expected1_notsorted = DatetimeIndex(list(other1) + list(rng1)) + + rng2 = date_range("1/1/2000", freq="D", periods=5, tz=tz) + other2 = date_range("1/4/2000", freq="D", periods=5, tz=tz) + expected2 = date_range("1/1/2000", freq="D", periods=8, tz=tz) + expected2_notsorted = DatetimeIndex(list(other2) + list(rng2[:3])) + + rng3 = date_range("1/1/2000", freq="D", periods=5, tz=tz) + other3 = DatetimeIndex([], tz=tz).as_unit("ns") + expected3 = date_range("1/1/2000", freq="D", periods=5, tz=tz) + expected3_notsorted = rng3 + + for rng, other, exp, exp_notsorted in [ + (rng1, other1, expected1, expected1_notsorted), + (rng2, other2, expected2, expected2_notsorted), + (rng3, other3, expected3, expected3_notsorted), + ]: + result_union = rng.union(other, sort=sort) + tm.assert_index_equal(result_union, exp) + + result_union = other.union(rng, sort=sort) + if sort is None: + tm.assert_index_equal(result_union, exp) + else: + tm.assert_index_equal(result_union, exp_notsorted) + + def test_union_coverage(self, sort): + idx = DatetimeIndex(["2000-01-03", "2000-01-01", "2000-01-02"]) + ordered = DatetimeIndex(idx.sort_values(), freq="infer") + result = ordered.union(idx, sort=sort) + tm.assert_index_equal(result, ordered) + + result = ordered[:0].union(ordered, sort=sort) + tm.assert_index_equal(result, ordered) + assert result.freq == ordered.freq + + def test_union_bug_1730(self, sort): + rng_a = date_range("1/1/2012", periods=4, freq="3h") + rng_b = date_range("1/1/2012", periods=4, freq="4h") + + result = rng_a.union(rng_b, sort=sort) + exp = list(rng_a) + list(rng_b[1:]) + if sort is None: + exp = DatetimeIndex(sorted(exp)) + else: + exp = DatetimeIndex(exp) + tm.assert_index_equal(result, exp) + + def test_union_bug_1745(self, sort): + left = DatetimeIndex(["2012-05-11 15:19:49.695000"]) + right = DatetimeIndex( + [ + "2012-05-29 13:04:21.322000", + "2012-05-11 15:27:24.873000", + "2012-05-11 15:31:05.350000", + ] + ) + + result = left.union(right, sort=sort) + exp = DatetimeIndex( + [ + "2012-05-11 15:19:49.695000", + "2012-05-29 13:04:21.322000", + "2012-05-11 15:27:24.873000", + "2012-05-11 15:31:05.350000", + ] + ) + if sort is None: + exp = exp.sort_values() + tm.assert_index_equal(result, exp) + + def test_union_bug_4564(self, sort): + from pandas import DateOffset + + left = date_range("2013-01-01", "2013-02-01") + right = left + DateOffset(minutes=15) + + result = left.union(right, sort=sort) + exp = list(left) + list(right) + if sort is None: + exp = DatetimeIndex(sorted(exp)) + else: + exp = DatetimeIndex(exp) + tm.assert_index_equal(result, exp) + + def test_union_freq_both_none(self, sort): + # GH11086 + expected = bdate_range("20150101", periods=10) + expected._data.freq = None + + result = expected.union(expected, sort=sort) + tm.assert_index_equal(result, expected) + assert result.freq is None + + def test_union_freq_infer(self): + # When taking the union of two DatetimeIndexes, we infer + # a freq even if the arguments don't have freq. This matches + # TimedeltaIndex behavior. + dti = date_range("2016-01-01", periods=5) + left = dti[[0, 1, 3, 4]] + right = dti[[2, 3, 1]] + + assert left.freq is None + assert right.freq is None + + result = left.union(right) + tm.assert_index_equal(result, dti) + assert result.freq == "D" + + def test_union_dataframe_index(self): + rng1 = date_range("1/1/1999", "1/1/2012", freq="MS") + s1 = Series(np.random.default_rng(2).standard_normal(len(rng1)), rng1) + + rng2 = date_range("1/1/1980", "12/1/2001", freq="MS") + s2 = Series(np.random.default_rng(2).standard_normal(len(rng2)), rng2) + df = DataFrame({"s1": s1, "s2": s2}) + + exp = date_range("1/1/1980", "1/1/2012", freq="MS") + tm.assert_index_equal(df.index, exp) + + def test_union_with_DatetimeIndex(self, sort): + i1 = Index(np.arange(0, 20, 2, dtype=np.int64)) + i2 = date_range(start="2012-01-03 00:00:00", periods=10, freq="D") + # Works + i1.union(i2, sort=sort) + # Fails with "AttributeError: can't set attribute" + i2.union(i1, sort=sort) + + def test_union_same_timezone_different_units(self): + # GH 55238 + idx1 = date_range("2000-01-01", periods=3, tz="UTC").as_unit("ms") + idx2 = date_range("2000-01-01", periods=3, tz="UTC").as_unit("us") + result = idx1.union(idx2) + expected = date_range("2000-01-01", periods=3, tz="UTC").as_unit("us") + tm.assert_index_equal(result, expected) + + # TODO: moved from test_datetimelike; de-duplicate with version below + def test_intersection2(self): + first = date_range("2020-01-01", periods=10) + second = first[5:] + intersect = first.intersection(second) + tm.assert_index_equal(intersect, second) + + # GH 10149 + cases = [klass(second.values) for klass in [np.array, Series, list]] + for case in cases: + result = first.intersection(case) + tm.assert_index_equal(result, second) + + third = Index(["a", "b", "c"]) + result = first.intersection(third) + expected = Index([], dtype=object) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "tz", [None, "Asia/Tokyo", "US/Eastern", "dateutil/US/Pacific"] + ) + def test_intersection(self, tz, sort): + # GH 4690 (with tz) + base = date_range("6/1/2000", "6/30/2000", freq="D", name="idx") + + # if target has the same name, it is preserved + rng2 = date_range("5/15/2000", "6/20/2000", freq="D", name="idx") + expected2 = date_range("6/1/2000", "6/20/2000", freq="D", name="idx") + + # if target name is different, it will be reset + rng3 = date_range("5/15/2000", "6/20/2000", freq="D", name="other") + expected3 = date_range("6/1/2000", "6/20/2000", freq="D", name=None) + + rng4 = date_range("7/1/2000", "7/31/2000", freq="D", name="idx") + expected4 = DatetimeIndex([], freq="D", name="idx", dtype="M8[ns]") + + for rng, expected in [ + (rng2, expected2), + (rng3, expected3), + (rng4, expected4), + ]: + result = base.intersection(rng) + tm.assert_index_equal(result, expected) + assert result.freq == expected.freq + + # non-monotonic + base = DatetimeIndex( + ["2011-01-05", "2011-01-04", "2011-01-02", "2011-01-03"], tz=tz, name="idx" + ).as_unit("ns") + + rng2 = DatetimeIndex( + ["2011-01-04", "2011-01-02", "2011-02-02", "2011-02-03"], tz=tz, name="idx" + ).as_unit("ns") + expected2 = DatetimeIndex( + ["2011-01-04", "2011-01-02"], tz=tz, name="idx" + ).as_unit("ns") + + rng3 = DatetimeIndex( + ["2011-01-04", "2011-01-02", "2011-02-02", "2011-02-03"], + tz=tz, + name="other", + ).as_unit("ns") + expected3 = DatetimeIndex( + ["2011-01-04", "2011-01-02"], tz=tz, name=None + ).as_unit("ns") + + # GH 7880 + rng4 = date_range("7/1/2000", "7/31/2000", freq="D", tz=tz, name="idx") + expected4 = DatetimeIndex([], tz=tz, name="idx").as_unit("ns") + assert expected4.freq is None + + for rng, expected in [ + (rng2, expected2), + (rng3, expected3), + (rng4, expected4), + ]: + result = base.intersection(rng, sort=sort) + if sort is None: + expected = expected.sort_values() + tm.assert_index_equal(result, expected) + assert result.freq == expected.freq + + # parametrize over both anchored and non-anchored freqs, as they + # have different code paths + @pytest.mark.parametrize("freq", ["min", "B"]) + def test_intersection_empty(self, tz_aware_fixture, freq): + # empty same freq GH2129 + tz = tz_aware_fixture + rng = date_range("6/1/2000", "6/15/2000", freq=freq, tz=tz) + result = rng[0:0].intersection(rng) + assert len(result) == 0 + assert result.freq == rng.freq + + result = rng.intersection(rng[0:0]) + assert len(result) == 0 + assert result.freq == rng.freq + + # no overlap GH#33604 + check_freq = freq != "min" # We don't preserve freq on non-anchored offsets + result = rng[:3].intersection(rng[-3:]) + tm.assert_index_equal(result, rng[:0]) + if check_freq: + # We don't preserve freq on non-anchored offsets + assert result.freq == rng.freq + + # swapped left and right + result = rng[-3:].intersection(rng[:3]) + tm.assert_index_equal(result, rng[:0]) + if check_freq: + # We don't preserve freq on non-anchored offsets + assert result.freq == rng.freq + + def test_intersection_bug_1708(self): + from pandas import DateOffset + + index_1 = date_range("1/1/2012", periods=4, freq="12h") + index_2 = index_1 + DateOffset(hours=1) + + result = index_1.intersection(index_2) + assert len(result) == 0 + + @pytest.mark.parametrize("tz", tz) + def test_difference(self, tz, sort): + rng_dates = ["1/2/2000", "1/3/2000", "1/1/2000", "1/4/2000", "1/5/2000"] + + rng1 = DatetimeIndex(rng_dates, tz=tz) + other1 = date_range("1/6/2000", freq="D", periods=5, tz=tz) + expected1 = DatetimeIndex(rng_dates, tz=tz) + + rng2 = DatetimeIndex(rng_dates, tz=tz) + other2 = date_range("1/4/2000", freq="D", periods=5, tz=tz) + expected2 = DatetimeIndex(rng_dates[:3], tz=tz) + + rng3 = DatetimeIndex(rng_dates, tz=tz) + other3 = DatetimeIndex([], tz=tz) + expected3 = DatetimeIndex(rng_dates, tz=tz) + + for rng, other, expected in [ + (rng1, other1, expected1), + (rng2, other2, expected2), + (rng3, other3, expected3), + ]: + result_diff = rng.difference(other, sort) + if sort is None and len(other): + # We dont sort (yet?) when empty GH#24959 + expected = expected.sort_values() + tm.assert_index_equal(result_diff, expected) + + def test_difference_freq(self, sort): + # GH14323: difference of DatetimeIndex should not preserve frequency + + index = date_range("20160920", "20160925", freq="D") + other = date_range("20160921", "20160924", freq="D") + expected = DatetimeIndex(["20160920", "20160925"], dtype="M8[ns]", freq=None) + idx_diff = index.difference(other, sort) + tm.assert_index_equal(idx_diff, expected) + tm.assert_attr_equal("freq", idx_diff, expected) + + # preserve frequency when the difference is a contiguous + # subset of the original range + other = date_range("20160922", "20160925", freq="D") + idx_diff = index.difference(other, sort) + expected = DatetimeIndex(["20160920", "20160921"], dtype="M8[ns]", freq="D") + tm.assert_index_equal(idx_diff, expected) + tm.assert_attr_equal("freq", idx_diff, expected) + + def test_datetimeindex_diff(self, sort): + dti1 = date_range(freq="QE-JAN", start=datetime(1997, 12, 31), periods=100) + dti2 = date_range(freq="QE-JAN", start=datetime(1997, 12, 31), periods=98) + assert len(dti1.difference(dti2, sort)) == 2 + + @pytest.mark.parametrize("tz", [None, "Asia/Tokyo", "US/Eastern"]) + def test_setops_preserve_freq(self, tz): + rng = date_range("1/1/2000", "1/1/2002", name="idx", tz=tz) + + result = rng[:50].union(rng[50:100]) + assert result.name == rng.name + assert result.freq == rng.freq + assert result.tz == rng.tz + + result = rng[:50].union(rng[30:100]) + assert result.name == rng.name + assert result.freq == rng.freq + assert result.tz == rng.tz + + result = rng[:50].union(rng[60:100]) + assert result.name == rng.name + assert result.freq is None + assert result.tz == rng.tz + + result = rng[:50].intersection(rng[25:75]) + assert result.name == rng.name + assert result.freqstr == "D" + assert result.tz == rng.tz + + nofreq = DatetimeIndex(list(rng[25:75]), name="other") + result = rng[:50].union(nofreq) + assert result.name is None + assert result.freq == rng.freq + assert result.tz == rng.tz + + result = rng[:50].intersection(nofreq) + assert result.name is None + assert result.freq == rng.freq + assert result.tz == rng.tz + + def test_intersection_non_tick_no_fastpath(self): + # GH#42104 + dti = DatetimeIndex( + [ + "2018-12-31", + "2019-03-31", + "2019-06-30", + "2019-09-30", + "2019-12-31", + "2020-03-31", + ], + freq="QE-DEC", + ) + result = dti[::2].intersection(dti[1::2]) + expected = dti[:0] + tm.assert_index_equal(result, expected) + + def test_dti_intersection(self): + rng = date_range("1/1/2011", periods=100, freq="h", tz="utc") + + left = rng[10:90][::-1] + right = rng[20:80][::-1] + + assert left.tz == rng.tz + result = left.intersection(right) + assert result.tz == left.tz + + # Note: not difference, as there is no symmetry requirement there + @pytest.mark.parametrize("setop", ["union", "intersection", "symmetric_difference"]) + def test_dti_setop_aware(self, setop): + # non-overlapping + # GH#39328 as of 2.0 we cast these to UTC instead of object + rng = date_range("2012-11-15 00:00:00", periods=6, freq="h", tz="US/Central") + + rng2 = date_range("2012-11-15 12:00:00", periods=6, freq="h", tz="US/Eastern") + + result = getattr(rng, setop)(rng2) + + left = rng.tz_convert("UTC") + right = rng2.tz_convert("UTC") + expected = getattr(left, setop)(right) + tm.assert_index_equal(result, expected) + assert result.tz == left.tz + if len(result): + assert result[0].tz is timezone.utc + assert result[-1].tz is timezone.utc + + def test_dti_union_mixed(self): + # GH#21671 + rng = DatetimeIndex([Timestamp("2011-01-01"), pd.NaT]) + rng2 = DatetimeIndex(["2012-01-01", "2012-01-02"], tz="Asia/Tokyo") + result = rng.union(rng2) + expected = Index( + [ + Timestamp("2011-01-01"), + pd.NaT, + Timestamp("2012-01-01", tz="Asia/Tokyo"), + Timestamp("2012-01-02", tz="Asia/Tokyo"), + ], + dtype=object, + ) + tm.assert_index_equal(result, expected) + + +class TestBusinessDatetimeIndex: + def test_union(self, sort): + rng = bdate_range(START, END) + # overlapping + left = rng[:10] + right = rng[5:10] + + the_union = left.union(right, sort=sort) + assert isinstance(the_union, DatetimeIndex) + + # non-overlapping, gap in middle + left = rng[:5] + right = rng[10:] + + the_union = left.union(right, sort=sort) + assert isinstance(the_union, Index) + + # non-overlapping, no gap + left = rng[:5] + right = rng[5:10] + + the_union = left.union(right, sort=sort) + assert isinstance(the_union, DatetimeIndex) + + # order does not matter + if sort is None: + tm.assert_index_equal(right.union(left, sort=sort), the_union) + else: + expected = DatetimeIndex(list(right) + list(left)) + tm.assert_index_equal(right.union(left, sort=sort), expected) + + # overlapping, but different offset + rng = date_range(START, END, freq=BMonthEnd()) + + the_union = rng.union(rng, sort=sort) + assert isinstance(the_union, DatetimeIndex) + + def test_union_not_cacheable(self, sort): + rng = date_range("1/1/2000", periods=50, freq=Minute()) + rng1 = rng[10:] + rng2 = rng[:25] + the_union = rng1.union(rng2, sort=sort) + if sort is None: + tm.assert_index_equal(the_union, rng) + else: + expected = DatetimeIndex(list(rng[10:]) + list(rng[:10])) + tm.assert_index_equal(the_union, expected) + + rng1 = rng[10:] + rng2 = rng[15:35] + the_union = rng1.union(rng2, sort=sort) + expected = rng[10:] + tm.assert_index_equal(the_union, expected) + + def test_intersection(self): + rng = date_range("1/1/2000", periods=50, freq=Minute()) + rng1 = rng[10:] + rng2 = rng[:25] + the_int = rng1.intersection(rng2) + expected = rng[10:25] + tm.assert_index_equal(the_int, expected) + assert isinstance(the_int, DatetimeIndex) + assert the_int.freq == rng.freq + + the_int = rng1.intersection(rng2) + tm.assert_index_equal(the_int, expected) + + # non-overlapping + the_int = rng[:10].intersection(rng[10:]) + expected = DatetimeIndex([]).as_unit("ns") + tm.assert_index_equal(the_int, expected) + + def test_intersection_bug(self): + # GH #771 + a = bdate_range("11/30/2011", "12/31/2011") + b = bdate_range("12/10/2011", "12/20/2011") + result = a.intersection(b) + tm.assert_index_equal(result, b) + assert result.freq == b.freq + + def test_intersection_list(self): + # GH#35876 + # values is not an Index -> no name -> retain "a" + values = [Timestamp("2020-01-01"), Timestamp("2020-02-01")] + idx = DatetimeIndex(values, name="a") + res = idx.intersection(values) + tm.assert_index_equal(res, idx) + + def test_month_range_union_tz_pytz(self, sort): + tz = pytz.timezone("US/Eastern") + + early_start = datetime(2011, 1, 1) + early_end = datetime(2011, 3, 1) + + late_start = datetime(2011, 3, 1) + late_end = datetime(2011, 5, 1) + + early_dr = date_range(start=early_start, end=early_end, tz=tz, freq=MonthEnd()) + late_dr = date_range(start=late_start, end=late_end, tz=tz, freq=MonthEnd()) + + early_dr.union(late_dr, sort=sort) + + @td.skip_if_windows + def test_month_range_union_tz_dateutil(self, sort): + from pandas._libs.tslibs.timezones import dateutil_gettz + + tz = dateutil_gettz("US/Eastern") + + early_start = datetime(2011, 1, 1) + early_end = datetime(2011, 3, 1) + + late_start = datetime(2011, 3, 1) + late_end = datetime(2011, 5, 1) + + early_dr = date_range(start=early_start, end=early_end, tz=tz, freq=MonthEnd()) + late_dr = date_range(start=late_start, end=late_end, tz=tz, freq=MonthEnd()) + + early_dr.union(late_dr, sort=sort) + + @pytest.mark.parametrize("sort", [False, None]) + def test_intersection_duplicates(self, sort): + # GH#38196 + idx1 = Index( + [ + Timestamp("2019-12-13"), + Timestamp("2019-12-12"), + Timestamp("2019-12-12"), + ] + ) + result = idx1.intersection(idx1, sort=sort) + expected = Index([Timestamp("2019-12-13"), Timestamp("2019-12-12")]) + tm.assert_index_equal(result, expected) + + +class TestCustomDatetimeIndex: + def test_union(self, sort): + # overlapping + rng = bdate_range(START, END, freq="C") + left = rng[:10] + right = rng[5:10] + + the_union = left.union(right, sort=sort) + assert isinstance(the_union, DatetimeIndex) + + # non-overlapping, gap in middle + left = rng[:5] + right = rng[10:] + + the_union = left.union(right, sort) + assert isinstance(the_union, Index) + + # non-overlapping, no gap + left = rng[:5] + right = rng[5:10] + + the_union = left.union(right, sort=sort) + assert isinstance(the_union, DatetimeIndex) + + # order does not matter + if sort is None: + tm.assert_index_equal(right.union(left, sort=sort), the_union) + + # overlapping, but different offset + rng = date_range(START, END, freq=BMonthEnd()) + + the_union = rng.union(rng, sort=sort) + assert isinstance(the_union, DatetimeIndex) + + def test_intersection_bug(self): + # GH #771 + a = bdate_range("11/30/2011", "12/31/2011", freq="C") + b = bdate_range("12/10/2011", "12/20/2011", freq="C") + result = a.intersection(b) + tm.assert_index_equal(result, b) + assert result.freq == b.freq + + @pytest.mark.parametrize( + "tz", [None, "UTC", "Europe/Berlin", pytz.FixedOffset(-60)] + ) + def test_intersection_dst_transition(self, tz): + # GH 46702: Europe/Berlin has DST transition + idx1 = date_range("2020-03-27", periods=5, freq="D", tz=tz) + idx2 = date_range("2020-03-30", periods=5, freq="D", tz=tz) + result = idx1.intersection(idx2) + expected = date_range("2020-03-30", periods=2, freq="D", tz=tz) + tm.assert_index_equal(result, expected) + + # GH#45863 same problem for union + index1 = date_range("2021-10-28", periods=3, freq="D", tz="Europe/London") + index2 = date_range("2021-10-30", periods=4, freq="D", tz="Europe/London") + result = index1.union(index2) + expected = date_range("2021-10-28", periods=6, freq="D", tz="Europe/London") + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_timezones.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_timezones.py new file mode 100644 index 0000000000000000000000000000000000000000..daa5b346eb4ec2034fb164be5c03f12b7d0b4dc6 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/datetimes/test_timezones.py @@ -0,0 +1,251 @@ +""" +Tests for DatetimeIndex timezone-related methods +""" +from datetime import ( + datetime, + timedelta, + timezone, + tzinfo, +) + +from dateutil.tz import gettz +import numpy as np +import pytest +import pytz + +from pandas._libs.tslibs import ( + conversion, + timezones, +) + +import pandas as pd +from pandas import ( + DatetimeIndex, + Timestamp, + bdate_range, + date_range, + isna, + to_datetime, +) +import pandas._testing as tm + + +class FixedOffset(tzinfo): + """Fixed offset in minutes east from UTC.""" + + def __init__(self, offset, name) -> None: + self.__offset = timedelta(minutes=offset) + self.__name = name + + def utcoffset(self, dt): + return self.__offset + + def tzname(self, dt): + return self.__name + + def dst(self, dt): + return timedelta(0) + + +fixed_off_no_name = FixedOffset(-330, None) + + +class TestDatetimeIndexTimezones: + # ------------------------------------------------------------- + # Unsorted + + def test_dti_drop_dont_lose_tz(self): + # GH#2621 + ind = date_range("2012-12-01", periods=10, tz="utc") + ind = ind.drop(ind[-1]) + + assert ind.tz is not None + + def test_dti_tz_conversion_freq(self, tz_naive_fixture): + # GH25241 + t3 = DatetimeIndex(["2019-01-01 10:00"], freq="h") + assert t3.tz_localize(tz=tz_naive_fixture).freq == t3.freq + t4 = DatetimeIndex(["2019-01-02 12:00"], tz="UTC", freq="min") + assert t4.tz_convert(tz="UTC").freq == t4.freq + + def test_drop_dst_boundary(self): + # see gh-18031 + tz = "Europe/Brussels" + freq = "15min" + + start = Timestamp("201710290100", tz=tz) + end = Timestamp("201710290300", tz=tz) + index = date_range(start=start, end=end, freq=freq) + + expected = DatetimeIndex( + [ + "201710290115", + "201710290130", + "201710290145", + "201710290200", + "201710290215", + "201710290230", + "201710290245", + "201710290200", + "201710290215", + "201710290230", + "201710290245", + "201710290300", + ], + dtype="M8[ns, Europe/Brussels]", + freq=freq, + ambiguous=[ + True, + True, + True, + True, + True, + True, + True, + False, + False, + False, + False, + False, + ], + ) + result = index.drop(index[0]) + tm.assert_index_equal(result, expected) + + def test_date_range_localize(self, unit): + rng = date_range( + "3/11/2012 03:00", periods=15, freq="h", tz="US/Eastern", unit=unit + ) + rng2 = DatetimeIndex( + ["3/11/2012 03:00", "3/11/2012 04:00"], dtype=f"M8[{unit}, US/Eastern]" + ) + rng3 = date_range("3/11/2012 03:00", periods=15, freq="h", unit=unit) + rng3 = rng3.tz_localize("US/Eastern") + + tm.assert_index_equal(rng._with_freq(None), rng3) + + # DST transition time + val = rng[0] + exp = Timestamp("3/11/2012 03:00", tz="US/Eastern") + + assert val.hour == 3 + assert exp.hour == 3 + assert val == exp # same UTC value + tm.assert_index_equal(rng[:2], rng2) + + def test_date_range_localize2(self, unit): + # Right before the DST transition + rng = date_range( + "3/11/2012 00:00", periods=2, freq="h", tz="US/Eastern", unit=unit + ) + rng2 = DatetimeIndex( + ["3/11/2012 00:00", "3/11/2012 01:00"], + dtype=f"M8[{unit}, US/Eastern]", + freq="h", + ) + tm.assert_index_equal(rng, rng2) + exp = Timestamp("3/11/2012 00:00", tz="US/Eastern") + assert exp.hour == 0 + assert rng[0] == exp + exp = Timestamp("3/11/2012 01:00", tz="US/Eastern") + assert exp.hour == 1 + assert rng[1] == exp + + rng = date_range( + "3/11/2012 00:00", periods=10, freq="h", tz="US/Eastern", unit=unit + ) + assert rng[2].hour == 3 + + def test_timestamp_equality_different_timezones(self): + utc_range = date_range("1/1/2000", periods=20, tz="UTC") + eastern_range = utc_range.tz_convert("US/Eastern") + berlin_range = utc_range.tz_convert("Europe/Berlin") + + for a, b, c in zip(utc_range, eastern_range, berlin_range): + assert a == b + assert b == c + assert a == c + + assert (utc_range == eastern_range).all() + assert (utc_range == berlin_range).all() + assert (berlin_range == eastern_range).all() + + def test_dti_equals_with_tz(self): + left = date_range("1/1/2011", periods=100, freq="h", tz="utc") + right = date_range("1/1/2011", periods=100, freq="h", tz="US/Eastern") + + assert not left.equals(right) + + @pytest.mark.parametrize("tzstr", ["US/Eastern", "dateutil/US/Eastern"]) + def test_dti_tz_nat(self, tzstr): + idx = DatetimeIndex([Timestamp("2013-1-1", tz=tzstr), pd.NaT]) + + assert isna(idx[1]) + assert idx[0].tzinfo is not None + + @pytest.mark.parametrize("tzstr", ["US/Eastern", "dateutil/US/Eastern"]) + def test_utc_box_timestamp_and_localize(self, tzstr): + tz = timezones.maybe_get_tz(tzstr) + + rng = date_range("3/11/2012", "3/12/2012", freq="h", tz="utc") + rng_eastern = rng.tz_convert(tzstr) + + expected = rng[-1].astimezone(tz) + + stamp = rng_eastern[-1] + assert stamp == expected + assert stamp.tzinfo == expected.tzinfo + + # right tzinfo + rng = date_range("3/13/2012", "3/14/2012", freq="h", tz="utc") + rng_eastern = rng.tz_convert(tzstr) + # test not valid for dateutil timezones. + # assert 'EDT' in repr(rng_eastern[0].tzinfo) + assert "EDT" in repr(rng_eastern[0].tzinfo) or "tzfile" in repr( + rng_eastern[0].tzinfo + ) + + @pytest.mark.parametrize("tz", [pytz.timezone("US/Central"), gettz("US/Central")]) + def test_with_tz(self, tz): + # just want it to work + start = datetime(2011, 3, 12, tzinfo=pytz.utc) + dr = bdate_range(start, periods=50, freq=pd.offsets.Hour()) + assert dr.tz is pytz.utc + + # DateRange with naive datetimes + dr = bdate_range("1/1/2005", "1/1/2009", tz=pytz.utc) + dr = bdate_range("1/1/2005", "1/1/2009", tz=tz) + + # normalized + central = dr.tz_convert(tz) + assert central.tz is tz + naive = central[0].to_pydatetime().replace(tzinfo=None) + comp = conversion.localize_pydatetime(naive, tz).tzinfo + assert central[0].tz is comp + + # compare vs a localized tz + naive = dr[0].to_pydatetime().replace(tzinfo=None) + comp = conversion.localize_pydatetime(naive, tz).tzinfo + assert central[0].tz is comp + + # datetimes with tzinfo set + dr = bdate_range( + datetime(2005, 1, 1, tzinfo=pytz.utc), datetime(2009, 1, 1, tzinfo=pytz.utc) + ) + msg = "Start and end cannot both be tz-aware with different timezones" + with pytest.raises(Exception, match=msg): + bdate_range(datetime(2005, 1, 1, tzinfo=pytz.utc), "1/1/2009", tz=tz) + + @pytest.mark.parametrize("tz", [pytz.timezone("US/Eastern"), gettz("US/Eastern")]) + def test_dti_convert_tz_aware_datetime_datetime(self, tz): + # GH#1581 + dates = [datetime(2000, 1, 1), datetime(2000, 1, 2), datetime(2000, 1, 3)] + + dates_aware = [conversion.localize_pydatetime(x, tz) for x in dates] + result = DatetimeIndex(dates_aware).as_unit("ns") + assert timezones.tz_compare(result.tz, tz) + + converted = to_datetime(dates_aware, utc=True).as_unit("ns") + ex_vals = np.array([Timestamp(x).as_unit("ns")._value for x in dates_aware]) + tm.assert_numpy_array_equal(converted.asi8, ex_vals) + assert converted.tz is timezone.utc diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/interval/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/interval/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/interval/test_astype.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/interval/test_astype.py new file mode 100644 index 0000000000000000000000000000000000000000..dde5f38074efb0dda0942e17022d9a22e3d44afa --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/interval/test_astype.py @@ -0,0 +1,254 @@ +import re + +import numpy as np +import pytest + +from pandas.core.dtypes.dtypes import ( + CategoricalDtype, + IntervalDtype, +) + +from pandas import ( + CategoricalIndex, + Index, + IntervalIndex, + NaT, + Timedelta, + Timestamp, + interval_range, +) +import pandas._testing as tm + + +class AstypeTests: + """Tests common to IntervalIndex with any subtype""" + + def test_astype_idempotent(self, index): + result = index.astype("interval") + tm.assert_index_equal(result, index) + + result = index.astype(index.dtype) + tm.assert_index_equal(result, index) + + def test_astype_object(self, index): + result = index.astype(object) + expected = Index(index.values, dtype="object") + tm.assert_index_equal(result, expected) + assert not result.equals(index) + + def test_astype_category(self, index): + result = index.astype("category") + expected = CategoricalIndex(index.values) + tm.assert_index_equal(result, expected) + + result = index.astype(CategoricalDtype()) + tm.assert_index_equal(result, expected) + + # non-default params + categories = index.dropna().unique().values[:-1] + dtype = CategoricalDtype(categories=categories, ordered=True) + result = index.astype(dtype) + expected = CategoricalIndex(index.values, categories=categories, ordered=True) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "dtype", + [ + "int64", + "uint64", + "float64", + "complex128", + "period[M]", + "timedelta64", + "timedelta64[ns]", + "datetime64", + "datetime64[ns]", + "datetime64[ns, US/Eastern]", + ], + ) + def test_astype_cannot_cast(self, index, dtype): + msg = "Cannot cast IntervalIndex to dtype" + with pytest.raises(TypeError, match=msg): + index.astype(dtype) + + def test_astype_invalid_dtype(self, index): + msg = "data type [\"']fake_dtype[\"'] not understood" + with pytest.raises(TypeError, match=msg): + index.astype("fake_dtype") + + +class TestIntSubtype(AstypeTests): + """Tests specific to IntervalIndex with integer-like subtype""" + + indexes = [ + IntervalIndex.from_breaks(np.arange(-10, 11, dtype="int64")), + IntervalIndex.from_breaks(np.arange(100, dtype="uint64"), closed="left"), + ] + + @pytest.fixture(params=indexes) + def index(self, request): + return request.param + + @pytest.mark.parametrize( + "subtype", ["float64", "datetime64[ns]", "timedelta64[ns]"] + ) + def test_subtype_conversion(self, index, subtype): + dtype = IntervalDtype(subtype, index.closed) + result = index.astype(dtype) + expected = IntervalIndex.from_arrays( + index.left.astype(subtype), index.right.astype(subtype), closed=index.closed + ) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "subtype_start, subtype_end", [("int64", "uint64"), ("uint64", "int64")] + ) + def test_subtype_integer(self, subtype_start, subtype_end): + index = IntervalIndex.from_breaks(np.arange(100, dtype=subtype_start)) + dtype = IntervalDtype(subtype_end, index.closed) + result = index.astype(dtype) + expected = IntervalIndex.from_arrays( + index.left.astype(subtype_end), + index.right.astype(subtype_end), + closed=index.closed, + ) + tm.assert_index_equal(result, expected) + + @pytest.mark.xfail(reason="GH#15832") + def test_subtype_integer_errors(self): + # int64 -> uint64 fails with negative values + index = interval_range(-10, 10) + dtype = IntervalDtype("uint64", "right") + + # Until we decide what the exception message _should_ be, we + # assert something that it should _not_ be. + # We should _not_ be getting a message suggesting that the -10 + # has been wrapped around to a large-positive integer + msg = "^(?!(left side of interval must be <= right side))" + with pytest.raises(ValueError, match=msg): + index.astype(dtype) + + +class TestFloatSubtype(AstypeTests): + """Tests specific to IntervalIndex with float subtype""" + + indexes = [ + interval_range(-10.0, 10.0, closed="neither"), + IntervalIndex.from_arrays( + [-1.5, np.nan, 0.0, 0.0, 1.5], [-0.5, np.nan, 1.0, 1.0, 3.0], closed="both" + ), + ] + + @pytest.fixture(params=indexes) + def index(self, request): + return request.param + + @pytest.mark.parametrize("subtype", ["int64", "uint64"]) + def test_subtype_integer(self, subtype): + index = interval_range(0.0, 10.0) + dtype = IntervalDtype(subtype, "right") + result = index.astype(dtype) + expected = IntervalIndex.from_arrays( + index.left.astype(subtype), index.right.astype(subtype), closed=index.closed + ) + tm.assert_index_equal(result, expected) + + # raises with NA + msg = r"Cannot convert non-finite values \(NA or inf\) to integer" + with pytest.raises(ValueError, match=msg): + index.insert(0, np.nan).astype(dtype) + + @pytest.mark.parametrize("subtype", ["int64", "uint64"]) + def test_subtype_integer_with_non_integer_borders(self, subtype): + index = interval_range(0.0, 3.0, freq=0.25) + dtype = IntervalDtype(subtype, "right") + result = index.astype(dtype) + expected = IntervalIndex.from_arrays( + index.left.astype(subtype), index.right.astype(subtype), closed=index.closed + ) + tm.assert_index_equal(result, expected) + + def test_subtype_integer_errors(self): + # float64 -> uint64 fails with negative values + index = interval_range(-10.0, 10.0) + dtype = IntervalDtype("uint64", "right") + msg = re.escape( + "Cannot convert interval[float64, right] to interval[uint64, right]; " + "subtypes are incompatible" + ) + with pytest.raises(TypeError, match=msg): + index.astype(dtype) + + @pytest.mark.parametrize("subtype", ["datetime64[ns]", "timedelta64[ns]"]) + def test_subtype_datetimelike(self, index, subtype): + dtype = IntervalDtype(subtype, "right") + msg = "Cannot convert .* to .*; subtypes are incompatible" + with pytest.raises(TypeError, match=msg): + index.astype(dtype) + + @pytest.mark.filterwarnings( + "ignore:invalid value encountered in cast:RuntimeWarning" + ) + def test_astype_category(self, index): + super().test_astype_category(index) + + +class TestDatetimelikeSubtype(AstypeTests): + """Tests specific to IntervalIndex with datetime-like subtype""" + + indexes = [ + interval_range(Timestamp("2018-01-01"), periods=10, closed="neither"), + interval_range(Timestamp("2018-01-01"), periods=10).insert(2, NaT), + interval_range(Timestamp("2018-01-01", tz="US/Eastern"), periods=10), + interval_range(Timedelta("0 days"), periods=10, closed="both"), + interval_range(Timedelta("0 days"), periods=10).insert(2, NaT), + ] + + @pytest.fixture(params=indexes) + def index(self, request): + return request.param + + @pytest.mark.parametrize("subtype", ["int64", "uint64"]) + def test_subtype_integer(self, index, subtype): + dtype = IntervalDtype(subtype, "right") + + if subtype != "int64": + msg = ( + r"Cannot convert interval\[(timedelta64|datetime64)\[ns.*\], .*\] " + r"to interval\[uint64, .*\]" + ) + with pytest.raises(TypeError, match=msg): + index.astype(dtype) + return + + result = index.astype(dtype) + new_left = index.left.astype(subtype) + new_right = index.right.astype(subtype) + + expected = IntervalIndex.from_arrays(new_left, new_right, closed=index.closed) + tm.assert_index_equal(result, expected) + + def test_subtype_float(self, index): + dtype = IntervalDtype("float64", "right") + msg = "Cannot convert .* to .*; subtypes are incompatible" + with pytest.raises(TypeError, match=msg): + index.astype(dtype) + + def test_subtype_datetimelike(self): + # datetime -> timedelta raises + dtype = IntervalDtype("timedelta64[ns]", "right") + msg = "Cannot convert .* to .*; subtypes are incompatible" + + index = interval_range(Timestamp("2018-01-01"), periods=10) + with pytest.raises(TypeError, match=msg): + index.astype(dtype) + + index = interval_range(Timestamp("2018-01-01", tz="CET"), periods=10) + with pytest.raises(TypeError, match=msg): + index.astype(dtype) + + # timedelta -> datetime raises + dtype = IntervalDtype("datetime64[ns]", "right") + index = interval_range(Timedelta("0 days"), periods=10) + with pytest.raises(TypeError, match=msg): + index.astype(dtype) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/interval/test_constructors.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/interval/test_constructors.py new file mode 100644 index 0000000000000000000000000000000000000000..e47a014f18045ae20fe27805a31b819b4ad229b9 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/interval/test_constructors.py @@ -0,0 +1,535 @@ +from functools import partial + +import numpy as np +import pytest + +import pandas.util._test_decorators as td + +from pandas.core.dtypes.common import is_unsigned_integer_dtype +from pandas.core.dtypes.dtypes import IntervalDtype + +from pandas import ( + Categorical, + CategoricalDtype, + CategoricalIndex, + Index, + Interval, + IntervalIndex, + date_range, + notna, + period_range, + timedelta_range, +) +import pandas._testing as tm +from pandas.core.arrays import IntervalArray +import pandas.core.common as com + + +@pytest.fixture(params=[None, "foo"]) +def name(request): + return request.param + + +class ConstructorTests: + """ + Common tests for all variations of IntervalIndex construction. Input data + to be supplied in breaks format, then converted by the subclass method + get_kwargs_from_breaks to the expected format. + """ + + @pytest.fixture( + params=[ + ([3, 14, 15, 92, 653], np.int64), + (np.arange(10, dtype="int64"), np.int64), + (Index(np.arange(-10, 11, dtype=np.int64)), np.int64), + (Index(np.arange(10, 31, dtype=np.uint64)), np.uint64), + (Index(np.arange(20, 30, 0.5), dtype=np.float64), np.float64), + (date_range("20180101", periods=10), " Interval(0.5, 1.5) + tm.assert_numpy_array_equal(actual, expected) + + actual = self.index == self.index + expected = np.array([True, True]) + tm.assert_numpy_array_equal(actual, expected) + actual = self.index <= self.index + tm.assert_numpy_array_equal(actual, expected) + actual = self.index >= self.index + tm.assert_numpy_array_equal(actual, expected) + + actual = self.index < self.index + expected = np.array([False, False]) + tm.assert_numpy_array_equal(actual, expected) + actual = self.index > self.index + tm.assert_numpy_array_equal(actual, expected) + + actual = self.index == IntervalIndex.from_breaks([0, 1, 2], "left") + tm.assert_numpy_array_equal(actual, expected) + + actual = self.index == self.index.values + tm.assert_numpy_array_equal(actual, np.array([True, True])) + actual = self.index.values == self.index + tm.assert_numpy_array_equal(actual, np.array([True, True])) + actual = self.index <= self.index.values + tm.assert_numpy_array_equal(actual, np.array([True, True])) + actual = self.index != self.index.values + tm.assert_numpy_array_equal(actual, np.array([False, False])) + actual = self.index > self.index.values + tm.assert_numpy_array_equal(actual, np.array([False, False])) + actual = self.index.values > self.index + tm.assert_numpy_array_equal(actual, np.array([False, False])) + + # invalid comparisons + actual = self.index == 0 + tm.assert_numpy_array_equal(actual, np.array([False, False])) + actual = self.index == self.index.left + tm.assert_numpy_array_equal(actual, np.array([False, False])) + + msg = "|".join( + [ + "not supported between instances of 'int' and '.*.Interval'", + r"Invalid comparison between dtype=interval\[int64, right\] and ", + ] + ) + with pytest.raises(TypeError, match=msg): + self.index > 0 + with pytest.raises(TypeError, match=msg): + self.index <= 0 + with pytest.raises(TypeError, match=msg): + self.index > np.arange(2) + + msg = "Lengths must match to compare" + with pytest.raises(ValueError, match=msg): + self.index > np.arange(3) + + def test_missing_values(self, closed): + idx = Index( + [np.nan, Interval(0, 1, closed=closed), Interval(1, 2, closed=closed)] + ) + idx2 = IntervalIndex.from_arrays([np.nan, 0, 1], [np.nan, 1, 2], closed=closed) + assert idx.equals(idx2) + + msg = ( + "missing values must be missing in the same location both left " + "and right sides" + ) + with pytest.raises(ValueError, match=msg): + IntervalIndex.from_arrays( + [np.nan, 0, 1], np.array([0, 1, 2]), closed=closed + ) + + tm.assert_numpy_array_equal(isna(idx), np.array([True, False, False])) + + def test_sort_values(self, closed): + index = self.create_index(closed=closed) + + result = index.sort_values() + tm.assert_index_equal(result, index) + + result = index.sort_values(ascending=False) + tm.assert_index_equal(result, index[::-1]) + + # with nan + index = IntervalIndex([Interval(1, 2), np.nan, Interval(0, 1)]) + + result = index.sort_values() + expected = IntervalIndex([Interval(0, 1), Interval(1, 2), np.nan]) + tm.assert_index_equal(result, expected) + + result = index.sort_values(ascending=False, na_position="first") + expected = IntervalIndex([np.nan, Interval(1, 2), Interval(0, 1)]) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("tz", [None, "US/Eastern"]) + def test_datetime(self, tz): + start = Timestamp("2000-01-01", tz=tz) + dates = date_range(start=start, periods=10) + index = IntervalIndex.from_breaks(dates) + + # test mid + start = Timestamp("2000-01-01T12:00", tz=tz) + expected = date_range(start=start, periods=9) + tm.assert_index_equal(index.mid, expected) + + # __contains__ doesn't check individual points + assert Timestamp("2000-01-01", tz=tz) not in index + assert Timestamp("2000-01-01T12", tz=tz) not in index + assert Timestamp("2000-01-02", tz=tz) not in index + iv_true = Interval( + Timestamp("2000-01-02", tz=tz), Timestamp("2000-01-03", tz=tz) + ) + iv_false = Interval( + Timestamp("1999-12-31", tz=tz), Timestamp("2000-01-01", tz=tz) + ) + assert iv_true in index + assert iv_false not in index + + # .contains does check individual points + assert not index.contains(Timestamp("2000-01-01", tz=tz)).any() + assert index.contains(Timestamp("2000-01-01T12", tz=tz)).any() + assert index.contains(Timestamp("2000-01-02", tz=tz)).any() + + # test get_indexer + start = Timestamp("1999-12-31T12:00", tz=tz) + target = date_range(start=start, periods=7, freq="12h") + actual = index.get_indexer(target) + expected = np.array([-1, -1, 0, 0, 1, 1, 2], dtype="intp") + tm.assert_numpy_array_equal(actual, expected) + + start = Timestamp("2000-01-08T18:00", tz=tz) + target = date_range(start=start, periods=7, freq="6h") + actual = index.get_indexer(target) + expected = np.array([7, 7, 8, 8, 8, 8, -1], dtype="intp") + tm.assert_numpy_array_equal(actual, expected) + + def test_append(self, closed): + index1 = IntervalIndex.from_arrays([0, 1], [1, 2], closed=closed) + index2 = IntervalIndex.from_arrays([1, 2], [2, 3], closed=closed) + + result = index1.append(index2) + expected = IntervalIndex.from_arrays([0, 1, 1, 2], [1, 2, 2, 3], closed=closed) + tm.assert_index_equal(result, expected) + + result = index1.append([index1, index2]) + expected = IntervalIndex.from_arrays( + [0, 1, 0, 1, 1, 2], [1, 2, 1, 2, 2, 3], closed=closed + ) + tm.assert_index_equal(result, expected) + + for other_closed in {"left", "right", "both", "neither"} - {closed}: + index_other_closed = IntervalIndex.from_arrays( + [0, 1], [1, 2], closed=other_closed + ) + result = index1.append(index_other_closed) + expected = index1.astype(object).append(index_other_closed.astype(object)) + tm.assert_index_equal(result, expected) + + def test_is_non_overlapping_monotonic(self, closed): + # Should be True in all cases + tpls = [(0, 1), (2, 3), (4, 5), (6, 7)] + idx = IntervalIndex.from_tuples(tpls, closed=closed) + assert idx.is_non_overlapping_monotonic is True + + idx = IntervalIndex.from_tuples(tpls[::-1], closed=closed) + assert idx.is_non_overlapping_monotonic is True + + # Should be False in all cases (overlapping) + tpls = [(0, 2), (1, 3), (4, 5), (6, 7)] + idx = IntervalIndex.from_tuples(tpls, closed=closed) + assert idx.is_non_overlapping_monotonic is False + + idx = IntervalIndex.from_tuples(tpls[::-1], closed=closed) + assert idx.is_non_overlapping_monotonic is False + + # Should be False in all cases (non-monotonic) + tpls = [(0, 1), (2, 3), (6, 7), (4, 5)] + idx = IntervalIndex.from_tuples(tpls, closed=closed) + assert idx.is_non_overlapping_monotonic is False + + idx = IntervalIndex.from_tuples(tpls[::-1], closed=closed) + assert idx.is_non_overlapping_monotonic is False + + # Should be False for closed='both', otherwise True (GH16560) + if closed == "both": + idx = IntervalIndex.from_breaks(range(4), closed=closed) + assert idx.is_non_overlapping_monotonic is False + else: + idx = IntervalIndex.from_breaks(range(4), closed=closed) + assert idx.is_non_overlapping_monotonic is True + + @pytest.mark.parametrize( + "start, shift, na_value", + [ + (0, 1, np.nan), + (Timestamp("2018-01-01"), Timedelta("1 day"), pd.NaT), + (Timedelta("0 days"), Timedelta("1 day"), pd.NaT), + ], + ) + def test_is_overlapping(self, start, shift, na_value, closed): + # GH 23309 + # see test_interval_tree.py for extensive tests; interface tests here + + # non-overlapping + tuples = [(start + n * shift, start + (n + 1) * shift) for n in (0, 2, 4)] + index = IntervalIndex.from_tuples(tuples, closed=closed) + assert index.is_overlapping is False + + # non-overlapping with NA + tuples = [(na_value, na_value)] + tuples + [(na_value, na_value)] + index = IntervalIndex.from_tuples(tuples, closed=closed) + assert index.is_overlapping is False + + # overlapping + tuples = [(start + n * shift, start + (n + 2) * shift) for n in range(3)] + index = IntervalIndex.from_tuples(tuples, closed=closed) + assert index.is_overlapping is True + + # overlapping with NA + tuples = [(na_value, na_value)] + tuples + [(na_value, na_value)] + index = IntervalIndex.from_tuples(tuples, closed=closed) + assert index.is_overlapping is True + + # common endpoints + tuples = [(start + n * shift, start + (n + 1) * shift) for n in range(3)] + index = IntervalIndex.from_tuples(tuples, closed=closed) + result = index.is_overlapping + expected = closed == "both" + assert result is expected + + # common endpoints with NA + tuples = [(na_value, na_value)] + tuples + [(na_value, na_value)] + index = IntervalIndex.from_tuples(tuples, closed=closed) + result = index.is_overlapping + assert result is expected + + # intervals with duplicate left values + a = [10, 15, 20, 25, 30, 35, 40, 45, 45, 50, 55, 60, 65, 70, 75, 80, 85] + b = [15, 20, 25, 30, 35, 40, 45, 45, 50, 55, 60, 65, 70, 75, 80, 85, 90] + index = IntervalIndex.from_arrays(a, b, closed="right") + result = index.is_overlapping + assert result is False + + @pytest.mark.parametrize( + "tuples", + [ + list(zip(range(10), range(1, 11))), + list( + zip( + date_range("20170101", periods=10), + date_range("20170101", periods=10), + ) + ), + list( + zip( + timedelta_range("0 days", periods=10), + timedelta_range("1 day", periods=10), + ) + ), + ], + ) + def test_to_tuples(self, tuples): + # GH 18756 + idx = IntervalIndex.from_tuples(tuples) + result = idx.to_tuples() + expected = Index(com.asarray_tuplesafe(tuples)) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "tuples", + [ + list(zip(range(10), range(1, 11))) + [np.nan], + list( + zip( + date_range("20170101", periods=10), + date_range("20170101", periods=10), + ) + ) + + [np.nan], + list( + zip( + timedelta_range("0 days", periods=10), + timedelta_range("1 day", periods=10), + ) + ) + + [np.nan], + ], + ) + @pytest.mark.parametrize("na_tuple", [True, False]) + def test_to_tuples_na(self, tuples, na_tuple): + # GH 18756 + idx = IntervalIndex.from_tuples(tuples) + result = idx.to_tuples(na_tuple=na_tuple) + + # check the non-NA portion + expected_notna = Index(com.asarray_tuplesafe(tuples[:-1])) + result_notna = result[:-1] + tm.assert_index_equal(result_notna, expected_notna) + + # check the NA portion + result_na = result[-1] + if na_tuple: + assert isinstance(result_na, tuple) + assert len(result_na) == 2 + assert all(isna(x) for x in result_na) + else: + assert isna(result_na) + + def test_nbytes(self): + # GH 19209 + left = np.arange(0, 4, dtype="i8") + right = np.arange(1, 5, dtype="i8") + + result = IntervalIndex.from_arrays(left, right).nbytes + expected = 64 # 4 * 8 * 2 + assert result == expected + + @pytest.mark.parametrize("new_closed", ["left", "right", "both", "neither"]) + def test_set_closed(self, name, closed, new_closed): + # GH 21670 + index = interval_range(0, 5, closed=closed, name=name) + result = index.set_closed(new_closed) + expected = interval_range(0, 5, closed=new_closed, name=name) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("bad_closed", ["foo", 10, "LEFT", True, False]) + def test_set_closed_errors(self, bad_closed): + # GH 21670 + index = interval_range(0, 5) + msg = f"invalid option for 'closed': {bad_closed}" + with pytest.raises(ValueError, match=msg): + index.set_closed(bad_closed) + + def test_is_all_dates(self): + # GH 23576 + year_2017 = Interval( + Timestamp("2017-01-01 00:00:00"), Timestamp("2018-01-01 00:00:00") + ) + year_2017_index = IntervalIndex([year_2017]) + assert not year_2017_index._is_all_dates + + +def test_dir(): + # GH#27571 dir(interval_index) should not raise + index = IntervalIndex.from_arrays([0, 1], [1, 2]) + result = dir(index) + assert "str" not in result + + +def test_searchsorted_different_argument_classes(listlike_box): + # https://github.com/pandas-dev/pandas/issues/32762 + values = IntervalIndex([Interval(0, 1), Interval(1, 2)]) + result = values.searchsorted(listlike_box(values)) + expected = np.array([0, 1], dtype=result.dtype) + tm.assert_numpy_array_equal(result, expected) + + result = values._data.searchsorted(listlike_box(values)) + tm.assert_numpy_array_equal(result, expected) + + +@pytest.mark.parametrize( + "arg", [[1, 2], ["a", "b"], [Timestamp("2020-01-01", tz="Europe/London")] * 2] +) +def test_searchsorted_invalid_argument(arg): + values = IntervalIndex([Interval(0, 1), Interval(1, 2)]) + msg = "'<' not supported between instances of 'pandas._libs.interval.Interval' and " + with pytest.raises(TypeError, match=msg): + values.searchsorted(arg) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/interval/test_interval_range.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/interval/test_interval_range.py new file mode 100644 index 0000000000000000000000000000000000000000..e8de59f84bcc6d6cece2768f942b4599d3ce1a2d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/interval/test_interval_range.py @@ -0,0 +1,369 @@ +from datetime import timedelta + +import numpy as np +import pytest + +from pandas.core.dtypes.common import is_integer + +from pandas import ( + DateOffset, + Interval, + IntervalIndex, + Timedelta, + Timestamp, + date_range, + interval_range, + timedelta_range, +) +import pandas._testing as tm + +from pandas.tseries.offsets import Day + + +@pytest.fixture(params=[None, "foo"]) +def name(request): + return request.param + + +class TestIntervalRange: + @pytest.mark.parametrize("freq, periods", [(1, 100), (2.5, 40), (5, 20), (25, 4)]) + def test_constructor_numeric(self, closed, name, freq, periods): + start, end = 0, 100 + breaks = np.arange(101, step=freq) + expected = IntervalIndex.from_breaks(breaks, name=name, closed=closed) + + # defined from start/end/freq + result = interval_range( + start=start, end=end, freq=freq, name=name, closed=closed + ) + tm.assert_index_equal(result, expected) + + # defined from start/periods/freq + result = interval_range( + start=start, periods=periods, freq=freq, name=name, closed=closed + ) + tm.assert_index_equal(result, expected) + + # defined from end/periods/freq + result = interval_range( + end=end, periods=periods, freq=freq, name=name, closed=closed + ) + tm.assert_index_equal(result, expected) + + # GH 20976: linspace behavior defined from start/end/periods + result = interval_range( + start=start, end=end, periods=periods, name=name, closed=closed + ) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("tz", [None, "US/Eastern"]) + @pytest.mark.parametrize( + "freq, periods", [("D", 364), ("2D", 182), ("22D18h", 16), ("ME", 11)] + ) + def test_constructor_timestamp(self, closed, name, freq, periods, tz): + start, end = Timestamp("20180101", tz=tz), Timestamp("20181231", tz=tz) + breaks = date_range(start=start, end=end, freq=freq) + expected = IntervalIndex.from_breaks(breaks, name=name, closed=closed) + + # defined from start/end/freq + result = interval_range( + start=start, end=end, freq=freq, name=name, closed=closed + ) + tm.assert_index_equal(result, expected) + + # defined from start/periods/freq + result = interval_range( + start=start, periods=periods, freq=freq, name=name, closed=closed + ) + tm.assert_index_equal(result, expected) + + # defined from end/periods/freq + result = interval_range( + end=end, periods=periods, freq=freq, name=name, closed=closed + ) + tm.assert_index_equal(result, expected) + + # GH 20976: linspace behavior defined from start/end/periods + if not breaks.freq.n == 1 and tz is None: + result = interval_range( + start=start, end=end, periods=periods, name=name, closed=closed + ) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "freq, periods", [("D", 100), ("2D12h", 40), ("5D", 20), ("25D", 4)] + ) + def test_constructor_timedelta(self, closed, name, freq, periods): + start, end = Timedelta("0 days"), Timedelta("100 days") + breaks = timedelta_range(start=start, end=end, freq=freq) + expected = IntervalIndex.from_breaks(breaks, name=name, closed=closed) + + # defined from start/end/freq + result = interval_range( + start=start, end=end, freq=freq, name=name, closed=closed + ) + tm.assert_index_equal(result, expected) + + # defined from start/periods/freq + result = interval_range( + start=start, periods=periods, freq=freq, name=name, closed=closed + ) + tm.assert_index_equal(result, expected) + + # defined from end/periods/freq + result = interval_range( + end=end, periods=periods, freq=freq, name=name, closed=closed + ) + tm.assert_index_equal(result, expected) + + # GH 20976: linspace behavior defined from start/end/periods + result = interval_range( + start=start, end=end, periods=periods, name=name, closed=closed + ) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "start, end, freq, expected_endpoint", + [ + (0, 10, 3, 9), + (0, 10, 1.5, 9), + (0.5, 10, 3, 9.5), + (Timedelta("0D"), Timedelta("10D"), "2D4h", Timedelta("8D16h")), + ( + Timestamp("2018-01-01"), + Timestamp("2018-02-09"), + "MS", + Timestamp("2018-02-01"), + ), + ( + Timestamp("2018-01-01", tz="US/Eastern"), + Timestamp("2018-01-20", tz="US/Eastern"), + "5D12h", + Timestamp("2018-01-17 12:00:00", tz="US/Eastern"), + ), + ], + ) + def test_early_truncation(self, start, end, freq, expected_endpoint): + # index truncates early if freq causes end to be skipped + result = interval_range(start=start, end=end, freq=freq) + result_endpoint = result.right[-1] + assert result_endpoint == expected_endpoint + + @pytest.mark.parametrize( + "start, end, freq", + [(0.5, None, None), (None, 4.5, None), (0.5, None, 1.5), (None, 6.5, 1.5)], + ) + def test_no_invalid_float_truncation(self, start, end, freq): + # GH 21161 + if freq is None: + breaks = [0.5, 1.5, 2.5, 3.5, 4.5] + else: + breaks = [0.5, 2.0, 3.5, 5.0, 6.5] + expected = IntervalIndex.from_breaks(breaks) + + result = interval_range(start=start, end=end, periods=4, freq=freq) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "start, mid, end", + [ + ( + Timestamp("2018-03-10", tz="US/Eastern"), + Timestamp("2018-03-10 23:30:00", tz="US/Eastern"), + Timestamp("2018-03-12", tz="US/Eastern"), + ), + ( + Timestamp("2018-11-03", tz="US/Eastern"), + Timestamp("2018-11-04 00:30:00", tz="US/Eastern"), + Timestamp("2018-11-05", tz="US/Eastern"), + ), + ], + ) + def test_linspace_dst_transition(self, start, mid, end): + # GH 20976: linspace behavior defined from start/end/periods + # accounts for the hour gained/lost during DST transition + start = start.as_unit("ns") + mid = mid.as_unit("ns") + end = end.as_unit("ns") + result = interval_range(start=start, end=end, periods=2) + expected = IntervalIndex.from_breaks([start, mid, end]) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("freq", [2, 2.0]) + @pytest.mark.parametrize("end", [10, 10.0]) + @pytest.mark.parametrize("start", [0, 0.0]) + def test_float_subtype(self, start, end, freq): + # Has float subtype if any of start/end/freq are float, even if all + # resulting endpoints can safely be upcast to integers + + # defined from start/end/freq + index = interval_range(start=start, end=end, freq=freq) + result = index.dtype.subtype + expected = "int64" if is_integer(start + end + freq) else "float64" + assert result == expected + + # defined from start/periods/freq + index = interval_range(start=start, periods=5, freq=freq) + result = index.dtype.subtype + expected = "int64" if is_integer(start + freq) else "float64" + assert result == expected + + # defined from end/periods/freq + index = interval_range(end=end, periods=5, freq=freq) + result = index.dtype.subtype + expected = "int64" if is_integer(end + freq) else "float64" + assert result == expected + + # GH 20976: linspace behavior defined from start/end/periods + index = interval_range(start=start, end=end, periods=5) + result = index.dtype.subtype + expected = "int64" if is_integer(start + end) else "float64" + assert result == expected + + def test_interval_range_fractional_period(self): + # float value for periods + expected = interval_range(start=0, periods=10) + msg = "Non-integer 'periods' in pd.date_range, .* pd.interval_range" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = interval_range(start=0, periods=10.5) + tm.assert_index_equal(result, expected) + + def test_constructor_coverage(self): + # equivalent timestamp-like start/end + start, end = Timestamp("2017-01-01"), Timestamp("2017-01-15") + expected = interval_range(start=start, end=end) + + result = interval_range(start=start.to_pydatetime(), end=end.to_pydatetime()) + tm.assert_index_equal(result, expected) + + result = interval_range(start=start.asm8, end=end.asm8) + tm.assert_index_equal(result, expected) + + # equivalent freq with timestamp + equiv_freq = [ + "D", + Day(), + Timedelta(days=1), + timedelta(days=1), + DateOffset(days=1), + ] + for freq in equiv_freq: + result = interval_range(start=start, end=end, freq=freq) + tm.assert_index_equal(result, expected) + + # equivalent timedelta-like start/end + start, end = Timedelta(days=1), Timedelta(days=10) + expected = interval_range(start=start, end=end) + + result = interval_range(start=start.to_pytimedelta(), end=end.to_pytimedelta()) + tm.assert_index_equal(result, expected) + + result = interval_range(start=start.asm8, end=end.asm8) + tm.assert_index_equal(result, expected) + + # equivalent freq with timedelta + equiv_freq = ["D", Day(), Timedelta(days=1), timedelta(days=1)] + for freq in equiv_freq: + result = interval_range(start=start, end=end, freq=freq) + tm.assert_index_equal(result, expected) + + def test_errors(self): + # not enough params + msg = ( + "Of the four parameters: start, end, periods, and freq, " + "exactly three must be specified" + ) + + with pytest.raises(ValueError, match=msg): + interval_range(start=0) + + with pytest.raises(ValueError, match=msg): + interval_range(end=5) + + with pytest.raises(ValueError, match=msg): + interval_range(periods=2) + + with pytest.raises(ValueError, match=msg): + interval_range() + + # too many params + with pytest.raises(ValueError, match=msg): + interval_range(start=0, end=5, periods=6, freq=1.5) + + # mixed units + msg = "start, end, freq need to be type compatible" + with pytest.raises(TypeError, match=msg): + interval_range(start=0, end=Timestamp("20130101"), freq=2) + + with pytest.raises(TypeError, match=msg): + interval_range(start=0, end=Timedelta("1 day"), freq=2) + + with pytest.raises(TypeError, match=msg): + interval_range(start=0, end=10, freq="D") + + with pytest.raises(TypeError, match=msg): + interval_range(start=Timestamp("20130101"), end=10, freq="D") + + with pytest.raises(TypeError, match=msg): + interval_range( + start=Timestamp("20130101"), end=Timedelta("1 day"), freq="D" + ) + + with pytest.raises(TypeError, match=msg): + interval_range( + start=Timestamp("20130101"), end=Timestamp("20130110"), freq=2 + ) + + with pytest.raises(TypeError, match=msg): + interval_range(start=Timedelta("1 day"), end=10, freq="D") + + with pytest.raises(TypeError, match=msg): + interval_range( + start=Timedelta("1 day"), end=Timestamp("20130110"), freq="D" + ) + + with pytest.raises(TypeError, match=msg): + interval_range(start=Timedelta("1 day"), end=Timedelta("10 days"), freq=2) + + # invalid periods + msg = "periods must be a number, got foo" + with pytest.raises(TypeError, match=msg): + interval_range(start=0, periods="foo") + + # invalid start + msg = "start must be numeric or datetime-like, got foo" + with pytest.raises(ValueError, match=msg): + interval_range(start="foo", periods=10) + + # invalid end + msg = r"end must be numeric or datetime-like, got \(0, 1\]" + with pytest.raises(ValueError, match=msg): + interval_range(end=Interval(0, 1), periods=10) + + # invalid freq for datetime-like + msg = "freq must be numeric or convertible to DateOffset, got foo" + with pytest.raises(ValueError, match=msg): + interval_range(start=0, end=10, freq="foo") + + with pytest.raises(ValueError, match=msg): + interval_range(start=Timestamp("20130101"), periods=10, freq="foo") + + with pytest.raises(ValueError, match=msg): + interval_range(end=Timedelta("1 day"), periods=10, freq="foo") + + # mixed tz + start = Timestamp("2017-01-01", tz="US/Eastern") + end = Timestamp("2017-01-07", tz="US/Pacific") + msg = "Start and end cannot both be tz-aware with different timezones" + with pytest.raises(TypeError, match=msg): + interval_range(start=start, end=end) + + def test_float_freq(self): + # GH 54477 + result = interval_range(0, 1, freq=0.1) + expected = IntervalIndex.from_breaks([0 + 0.1 * n for n in range(11)]) + tm.assert_index_equal(result, expected) + + result = interval_range(0, 1, freq=0.6) + expected = IntervalIndex.from_breaks([0, 0.6]) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/interval/test_interval_tree.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/interval/test_interval_tree.py new file mode 100644 index 0000000000000000000000000000000000000000..78388e84fc6dc1af7dadd78b88a1155ed8cfd812 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/interval/test_interval_tree.py @@ -0,0 +1,208 @@ +from itertools import permutations + +import numpy as np +import pytest + +from pandas._libs.interval import IntervalTree +from pandas.compat import IS64 + +import pandas._testing as tm + + +def skipif_32bit(param): + """ + Skip parameters in a parametrize on 32bit systems. Specifically used + here to skip leaf_size parameters related to GH 23440. + """ + marks = pytest.mark.skipif(not IS64, reason="GH 23440: int type mismatch on 32bit") + return pytest.param(param, marks=marks) + + +@pytest.fixture(params=["int64", "float64", "uint64"]) +def dtype(request): + return request.param + + +@pytest.fixture(params=[skipif_32bit(1), skipif_32bit(2), 10]) +def leaf_size(request): + """ + Fixture to specify IntervalTree leaf_size parameter; to be used with the + tree fixture. + """ + return request.param + + +@pytest.fixture( + params=[ + np.arange(5, dtype="int64"), + np.arange(5, dtype="uint64"), + np.arange(5, dtype="float64"), + np.array([0, 1, 2, 3, 4, np.nan], dtype="float64"), + ] +) +def tree(request, leaf_size): + left = request.param + return IntervalTree(left, left + 2, leaf_size=leaf_size) + + +class TestIntervalTree: + def test_get_indexer(self, tree): + result = tree.get_indexer(np.array([1.0, 5.5, 6.5])) + expected = np.array([0, 4, -1], dtype="intp") + tm.assert_numpy_array_equal(result, expected) + + with pytest.raises( + KeyError, match="'indexer does not intersect a unique set of intervals'" + ): + tree.get_indexer(np.array([3.0])) + + @pytest.mark.parametrize( + "dtype, target_value, target_dtype", + [("int64", 2**63 + 1, "uint64"), ("uint64", -1, "int64")], + ) + def test_get_indexer_overflow(self, dtype, target_value, target_dtype): + left, right = np.array([0, 1], dtype=dtype), np.array([1, 2], dtype=dtype) + tree = IntervalTree(left, right) + + result = tree.get_indexer(np.array([target_value], dtype=target_dtype)) + expected = np.array([-1], dtype="intp") + tm.assert_numpy_array_equal(result, expected) + + def test_get_indexer_non_unique(self, tree): + indexer, missing = tree.get_indexer_non_unique(np.array([1.0, 2.0, 6.5])) + + result = indexer[:1] + expected = np.array([0], dtype="intp") + tm.assert_numpy_array_equal(result, expected) + + result = np.sort(indexer[1:3]) + expected = np.array([0, 1], dtype="intp") + tm.assert_numpy_array_equal(result, expected) + + result = np.sort(indexer[3:]) + expected = np.array([-1], dtype="intp") + tm.assert_numpy_array_equal(result, expected) + + result = missing + expected = np.array([2], dtype="intp") + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize( + "dtype, target_value, target_dtype", + [("int64", 2**63 + 1, "uint64"), ("uint64", -1, "int64")], + ) + def test_get_indexer_non_unique_overflow(self, dtype, target_value, target_dtype): + left, right = np.array([0, 2], dtype=dtype), np.array([1, 3], dtype=dtype) + tree = IntervalTree(left, right) + target = np.array([target_value], dtype=target_dtype) + + result_indexer, result_missing = tree.get_indexer_non_unique(target) + expected_indexer = np.array([-1], dtype="intp") + tm.assert_numpy_array_equal(result_indexer, expected_indexer) + + expected_missing = np.array([0], dtype="intp") + tm.assert_numpy_array_equal(result_missing, expected_missing) + + def test_duplicates(self, dtype): + left = np.array([0, 0, 0], dtype=dtype) + tree = IntervalTree(left, left + 1) + + with pytest.raises( + KeyError, match="'indexer does not intersect a unique set of intervals'" + ): + tree.get_indexer(np.array([0.5])) + + indexer, missing = tree.get_indexer_non_unique(np.array([0.5])) + result = np.sort(indexer) + expected = np.array([0, 1, 2], dtype="intp") + tm.assert_numpy_array_equal(result, expected) + + result = missing + expected = np.array([], dtype="intp") + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize( + "leaf_size", [skipif_32bit(1), skipif_32bit(10), skipif_32bit(100), 10000] + ) + def test_get_indexer_closed(self, closed, leaf_size): + x = np.arange(1000, dtype="float64") + found = x.astype("intp") + not_found = (-1 * np.ones(1000)).astype("intp") + + tree = IntervalTree(x, x + 0.5, closed=closed, leaf_size=leaf_size) + tm.assert_numpy_array_equal(found, tree.get_indexer(x + 0.25)) + + expected = found if tree.closed_left else not_found + tm.assert_numpy_array_equal(expected, tree.get_indexer(x + 0.0)) + + expected = found if tree.closed_right else not_found + tm.assert_numpy_array_equal(expected, tree.get_indexer(x + 0.5)) + + @pytest.mark.parametrize( + "left, right, expected", + [ + (np.array([0, 1, 4], dtype="int64"), np.array([2, 3, 5]), True), + (np.array([0, 1, 2], dtype="int64"), np.array([5, 4, 3]), True), + (np.array([0, 1, np.nan]), np.array([5, 4, np.nan]), True), + (np.array([0, 2, 4], dtype="int64"), np.array([1, 3, 5]), False), + (np.array([0, 2, np.nan]), np.array([1, 3, np.nan]), False), + ], + ) + @pytest.mark.parametrize("order", (list(x) for x in permutations(range(3)))) + def test_is_overlapping(self, closed, order, left, right, expected): + # GH 23309 + tree = IntervalTree(left[order], right[order], closed=closed) + result = tree.is_overlapping + assert result is expected + + @pytest.mark.parametrize("order", (list(x) for x in permutations(range(3)))) + def test_is_overlapping_endpoints(self, closed, order): + """shared endpoints are marked as overlapping""" + # GH 23309 + left, right = np.arange(3, dtype="int64"), np.arange(1, 4) + tree = IntervalTree(left[order], right[order], closed=closed) + result = tree.is_overlapping + expected = closed == "both" + assert result is expected + + @pytest.mark.parametrize( + "left, right", + [ + (np.array([], dtype="int64"), np.array([], dtype="int64")), + (np.array([0], dtype="int64"), np.array([1], dtype="int64")), + (np.array([np.nan]), np.array([np.nan])), + (np.array([np.nan] * 3), np.array([np.nan] * 3)), + ], + ) + def test_is_overlapping_trivial(self, closed, left, right): + # GH 23309 + tree = IntervalTree(left, right, closed=closed) + assert tree.is_overlapping is False + + @pytest.mark.skipif(not IS64, reason="GH 23440") + def test_construction_overflow(self): + # GH 25485 + left, right = np.arange(101, dtype="int64"), [np.iinfo(np.int64).max] * 101 + tree = IntervalTree(left, right) + + # pivot should be average of left/right medians + result = tree.root.pivot + expected = (50 + np.iinfo(np.int64).max) / 2 + assert result == expected + + @pytest.mark.parametrize( + "left, right, expected", + [ + ([-np.inf, 1.0], [1.0, 2.0], 0.0), + ([-np.inf, -2.0], [-2.0, -1.0], -2.0), + ([-2.0, -1.0], [-1.0, np.inf], 0.0), + ([1.0, 2.0], [2.0, np.inf], 2.0), + ], + ) + def test_inf_bound_infinite_recursion(self, left, right, expected): + # GH 46658 + + tree = IntervalTree(left * 101, right * 101) + + result = tree.root.pivot + assert result == expected diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/interval/test_join.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/interval/test_join.py new file mode 100644 index 0000000000000000000000000000000000000000..2f42c530a66868fa69b1d449e75f84d42592bb77 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/interval/test_join.py @@ -0,0 +1,44 @@ +import pytest + +from pandas import ( + IntervalIndex, + MultiIndex, + RangeIndex, +) +import pandas._testing as tm + + +@pytest.fixture +def range_index(): + return RangeIndex(3, name="range_index") + + +@pytest.fixture +def interval_index(): + return IntervalIndex.from_tuples( + [(0.0, 1.0), (1.0, 2.0), (1.5, 2.5)], name="interval_index" + ) + + +def test_join_overlapping_in_mi_to_same_intervalindex(range_index, interval_index): + # GH-45661 + multi_index = MultiIndex.from_product([interval_index, range_index]) + result = multi_index.join(interval_index) + + tm.assert_index_equal(result, multi_index) + + +def test_join_overlapping_to_multiindex_with_same_interval(range_index, interval_index): + # GH-45661 + multi_index = MultiIndex.from_product([interval_index, range_index]) + result = interval_index.join(multi_index) + + tm.assert_index_equal(result, multi_index) + + +def test_join_overlapping_interval_to_another_intervalindex(interval_index): + # GH-45661 + flipped_interval_index = interval_index[::-1] + result = interval_index.join(flipped_interval_index) + + tm.assert_index_equal(result, interval_index) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/interval/test_pickle.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/interval/test_pickle.py new file mode 100644 index 0000000000000000000000000000000000000000..308a90e72eab5db55f300341212d2c04e82c6900 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/interval/test_pickle.py @@ -0,0 +1,13 @@ +import pytest + +from pandas import IntervalIndex +import pandas._testing as tm + + +class TestPickle: + @pytest.mark.parametrize("closed", ["left", "right", "both"]) + def test_pickle_round_trip_closed(self, closed): + # https://github.com/pandas-dev/pandas/issues/35658 + idx = IntervalIndex.from_tuples([(1, 2), (2, 3)], closed=closed) + result = tm.round_trip_pickle(idx) + tm.assert_index_equal(result, idx) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/interval/test_setops.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/interval/test_setops.py new file mode 100644 index 0000000000000000000000000000000000000000..1b0816a9405cb9dd6ed81691e72012c948b898a2 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/interval/test_setops.py @@ -0,0 +1,208 @@ +import numpy as np +import pytest + +from pandas import ( + Index, + IntervalIndex, + Timestamp, + interval_range, +) +import pandas._testing as tm + + +def monotonic_index(start, end, dtype="int64", closed="right"): + return IntervalIndex.from_breaks(np.arange(start, end, dtype=dtype), closed=closed) + + +def empty_index(dtype="int64", closed="right"): + return IntervalIndex(np.array([], dtype=dtype), closed=closed) + + +class TestIntervalIndex: + def test_union(self, closed, sort): + index = monotonic_index(0, 11, closed=closed) + other = monotonic_index(5, 13, closed=closed) + + expected = monotonic_index(0, 13, closed=closed) + result = index[::-1].union(other, sort=sort) + if sort in (None, True): + tm.assert_index_equal(result, expected) + else: + tm.assert_index_equal(result.sort_values(), expected) + + result = other[::-1].union(index, sort=sort) + if sort in (None, True): + tm.assert_index_equal(result, expected) + else: + tm.assert_index_equal(result.sort_values(), expected) + + tm.assert_index_equal(index.union(index, sort=sort), index) + tm.assert_index_equal(index.union(index[:1], sort=sort), index) + + def test_union_empty_result(self, closed, sort): + # GH 19101: empty result, same dtype + index = empty_index(dtype="int64", closed=closed) + result = index.union(index, sort=sort) + tm.assert_index_equal(result, index) + + # GH 19101: empty result, different numeric dtypes -> common dtype is f8 + other = empty_index(dtype="float64", closed=closed) + result = index.union(other, sort=sort) + expected = other + tm.assert_index_equal(result, expected) + + other = index.union(index, sort=sort) + tm.assert_index_equal(result, expected) + + other = empty_index(dtype="uint64", closed=closed) + result = index.union(other, sort=sort) + tm.assert_index_equal(result, expected) + + result = other.union(index, sort=sort) + tm.assert_index_equal(result, expected) + + def test_intersection(self, closed, sort): + index = monotonic_index(0, 11, closed=closed) + other = monotonic_index(5, 13, closed=closed) + + expected = monotonic_index(5, 11, closed=closed) + result = index[::-1].intersection(other, sort=sort) + if sort in (None, True): + tm.assert_index_equal(result, expected) + else: + tm.assert_index_equal(result.sort_values(), expected) + + result = other[::-1].intersection(index, sort=sort) + if sort in (None, True): + tm.assert_index_equal(result, expected) + else: + tm.assert_index_equal(result.sort_values(), expected) + + tm.assert_index_equal(index.intersection(index, sort=sort), index) + + # GH 26225: nested intervals + index = IntervalIndex.from_tuples([(1, 2), (1, 3), (1, 4), (0, 2)]) + other = IntervalIndex.from_tuples([(1, 2), (1, 3)]) + expected = IntervalIndex.from_tuples([(1, 2), (1, 3)]) + result = index.intersection(other) + tm.assert_index_equal(result, expected) + + # GH 26225 + index = IntervalIndex.from_tuples([(0, 3), (0, 2)]) + other = IntervalIndex.from_tuples([(0, 2), (1, 3)]) + expected = IntervalIndex.from_tuples([(0, 2)]) + result = index.intersection(other) + tm.assert_index_equal(result, expected) + + # GH 26225: duplicate nan element + index = IntervalIndex([np.nan, np.nan]) + other = IntervalIndex([np.nan]) + expected = IntervalIndex([np.nan]) + result = index.intersection(other) + tm.assert_index_equal(result, expected) + + def test_intersection_empty_result(self, closed, sort): + index = monotonic_index(0, 11, closed=closed) + + # GH 19101: empty result, same dtype + other = monotonic_index(300, 314, closed=closed) + expected = empty_index(dtype="int64", closed=closed) + result = index.intersection(other, sort=sort) + tm.assert_index_equal(result, expected) + + # GH 19101: empty result, different numeric dtypes -> common dtype is float64 + other = monotonic_index(300, 314, dtype="float64", closed=closed) + result = index.intersection(other, sort=sort) + expected = other[:0] + tm.assert_index_equal(result, expected) + + other = monotonic_index(300, 314, dtype="uint64", closed=closed) + result = index.intersection(other, sort=sort) + tm.assert_index_equal(result, expected) + + def test_intersection_duplicates(self): + # GH#38743 + index = IntervalIndex.from_tuples([(1, 2), (1, 2), (2, 3), (3, 4)]) + other = IntervalIndex.from_tuples([(1, 2), (2, 3)]) + expected = IntervalIndex.from_tuples([(1, 2), (2, 3)]) + result = index.intersection(other) + tm.assert_index_equal(result, expected) + + def test_difference(self, closed, sort): + index = IntervalIndex.from_arrays([1, 0, 3, 2], [1, 2, 3, 4], closed=closed) + result = index.difference(index[:1], sort=sort) + expected = index[1:] + if sort is None: + expected = expected.sort_values() + tm.assert_index_equal(result, expected) + + # GH 19101: empty result, same dtype + result = index.difference(index, sort=sort) + expected = empty_index(dtype="int64", closed=closed) + tm.assert_index_equal(result, expected) + + # GH 19101: empty result, different dtypes + other = IntervalIndex.from_arrays( + index.left.astype("float64"), index.right, closed=closed + ) + result = index.difference(other, sort=sort) + tm.assert_index_equal(result, expected) + + def test_symmetric_difference(self, closed, sort): + index = monotonic_index(0, 11, closed=closed) + result = index[1:].symmetric_difference(index[:-1], sort=sort) + expected = IntervalIndex([index[0], index[-1]]) + if sort in (None, True): + tm.assert_index_equal(result, expected) + else: + tm.assert_index_equal(result.sort_values(), expected) + + # GH 19101: empty result, same dtype + result = index.symmetric_difference(index, sort=sort) + expected = empty_index(dtype="int64", closed=closed) + if sort in (None, True): + tm.assert_index_equal(result, expected) + else: + tm.assert_index_equal(result.sort_values(), expected) + + # GH 19101: empty result, different dtypes + other = IntervalIndex.from_arrays( + index.left.astype("float64"), index.right, closed=closed + ) + result = index.symmetric_difference(other, sort=sort) + expected = empty_index(dtype="float64", closed=closed) + tm.assert_index_equal(result, expected) + + @pytest.mark.filterwarnings("ignore:'<' not supported between:RuntimeWarning") + @pytest.mark.parametrize( + "op_name", ["union", "intersection", "difference", "symmetric_difference"] + ) + def test_set_incompatible_types(self, closed, op_name, sort): + index = monotonic_index(0, 11, closed=closed) + set_op = getattr(index, op_name) + + # TODO: standardize return type of non-union setops type(self vs other) + # non-IntervalIndex + if op_name == "difference": + expected = index + else: + expected = getattr(index.astype("O"), op_name)(Index([1, 2, 3])) + result = set_op(Index([1, 2, 3]), sort=sort) + tm.assert_index_equal(result, expected) + + # mixed closed -> cast to object + for other_closed in {"right", "left", "both", "neither"} - {closed}: + other = monotonic_index(0, 11, closed=other_closed) + expected = getattr(index.astype(object), op_name)(other, sort=sort) + if op_name == "difference": + expected = index + result = set_op(other, sort=sort) + tm.assert_index_equal(result, expected) + + # GH 19016: incompatible dtypes -> cast to object + other = interval_range(Timestamp("20180101"), periods=9, closed=closed) + expected = getattr(index.astype(object), op_name)(other, sort=sort) + if op_name == "difference": + expected = index + result = set_op(other, sort=sort) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/conftest.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/conftest.py new file mode 100644 index 0000000000000000000000000000000000000000..15062aee56e3a1b91d1f6eb76a4f86e381e0ad44 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/conftest.py @@ -0,0 +1,27 @@ +import numpy as np +import pytest + +from pandas import ( + Index, + MultiIndex, +) + + +# Note: identical the "multi" entry in the top-level "index" fixture +@pytest.fixture +def idx(): + # a MultiIndex used to test the general functionality of the + # general functionality of this object + major_axis = Index(["foo", "bar", "baz", "qux"]) + minor_axis = Index(["one", "two"]) + + major_codes = np.array([0, 0, 1, 2, 3, 3]) + minor_codes = np.array([0, 1, 0, 1, 0, 1]) + index_names = ["first", "second"] + mi = MultiIndex( + levels=[major_axis, minor_axis], + codes=[major_codes, minor_codes], + names=index_names, + verify_integrity=False, + ) + return mi diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_analytics.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_analytics.py new file mode 100644 index 0000000000000000000000000000000000000000..87f1439db5fc87c3be08e3675df1dae0fdb5554d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_analytics.py @@ -0,0 +1,263 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + Index, + MultiIndex, + date_range, + period_range, +) +import pandas._testing as tm + + +def test_infer_objects(idx): + with pytest.raises(NotImplementedError, match="to_frame"): + idx.infer_objects() + + +def test_shift(idx): + # GH8083 test the base class for shift + msg = ( + "This method is only implemented for DatetimeIndex, PeriodIndex and " + "TimedeltaIndex; Got type MultiIndex" + ) + with pytest.raises(NotImplementedError, match=msg): + idx.shift(1) + with pytest.raises(NotImplementedError, match=msg): + idx.shift(1, 2) + + +def test_groupby(idx): + groups = idx.groupby(np.array([1, 1, 1, 2, 2, 2])) + labels = idx.tolist() + exp = {1: labels[:3], 2: labels[3:]} + tm.assert_dict_equal(groups, exp) + + # GH5620 + groups = idx.groupby(idx) + exp = {key: [key] for key in idx} + tm.assert_dict_equal(groups, exp) + + +def test_truncate_multiindex(): + # GH 34564 for MultiIndex level names check + major_axis = Index(list(range(4))) + minor_axis = Index(list(range(2))) + + major_codes = np.array([0, 0, 1, 2, 3, 3]) + minor_codes = np.array([0, 1, 0, 1, 0, 1]) + + index = MultiIndex( + levels=[major_axis, minor_axis], + codes=[major_codes, minor_codes], + names=["L1", "L2"], + ) + + result = index.truncate(before=1) + assert "foo" not in result.levels[0] + assert 1 in result.levels[0] + assert index.names == result.names + + result = index.truncate(after=1) + assert 2 not in result.levels[0] + assert 1 in result.levels[0] + assert index.names == result.names + + result = index.truncate(before=1, after=2) + assert len(result.levels[0]) == 2 + assert index.names == result.names + + msg = "after < before" + with pytest.raises(ValueError, match=msg): + index.truncate(3, 1) + + +# TODO: reshape + + +def test_reorder_levels(idx): + # this blows up + with pytest.raises(IndexError, match="^Too many levels"): + idx.reorder_levels([2, 1, 0]) + + +def test_numpy_repeat(): + reps = 2 + numbers = [1, 2, 3] + names = np.array(["foo", "bar"]) + + m = MultiIndex.from_product([numbers, names], names=names) + expected = MultiIndex.from_product([numbers, names.repeat(reps)], names=names) + tm.assert_index_equal(np.repeat(m, reps), expected) + + msg = "the 'axis' parameter is not supported" + with pytest.raises(ValueError, match=msg): + np.repeat(m, reps, axis=1) + + +def test_append_mixed_dtypes(): + # GH 13660 + dti = date_range("2011-01-01", freq="ME", periods=3) + dti_tz = date_range("2011-01-01", freq="ME", periods=3, tz="US/Eastern") + pi = period_range("2011-01", freq="M", periods=3) + + mi = MultiIndex.from_arrays( + [[1, 2, 3], [1.1, np.nan, 3.3], ["a", "b", "c"], dti, dti_tz, pi] + ) + assert mi.nlevels == 6 + + res = mi.append(mi) + exp = MultiIndex.from_arrays( + [ + [1, 2, 3, 1, 2, 3], + [1.1, np.nan, 3.3, 1.1, np.nan, 3.3], + ["a", "b", "c", "a", "b", "c"], + dti.append(dti), + dti_tz.append(dti_tz), + pi.append(pi), + ] + ) + tm.assert_index_equal(res, exp) + + other = MultiIndex.from_arrays( + [ + ["x", "y", "z"], + ["x", "y", "z"], + ["x", "y", "z"], + ["x", "y", "z"], + ["x", "y", "z"], + ["x", "y", "z"], + ] + ) + + res = mi.append(other) + exp = MultiIndex.from_arrays( + [ + [1, 2, 3, "x", "y", "z"], + [1.1, np.nan, 3.3, "x", "y", "z"], + ["a", "b", "c", "x", "y", "z"], + dti.append(Index(["x", "y", "z"])), + dti_tz.append(Index(["x", "y", "z"])), + pi.append(Index(["x", "y", "z"])), + ] + ) + tm.assert_index_equal(res, exp) + + +def test_iter(idx): + result = list(idx) + expected = [ + ("foo", "one"), + ("foo", "two"), + ("bar", "one"), + ("baz", "two"), + ("qux", "one"), + ("qux", "two"), + ] + assert result == expected + + +def test_sub(idx): + first = idx + + # - now raises (previously was set op difference) + msg = "cannot perform __sub__ with this index type: MultiIndex" + with pytest.raises(TypeError, match=msg): + first - idx[-3:] + with pytest.raises(TypeError, match=msg): + idx[-3:] - first + with pytest.raises(TypeError, match=msg): + idx[-3:] - first.tolist() + msg = "cannot perform __rsub__ with this index type: MultiIndex" + with pytest.raises(TypeError, match=msg): + first.tolist() - idx[-3:] + + +def test_map(idx): + # callable + index = idx + + result = index.map(lambda x: x) + tm.assert_index_equal(result, index) + + +@pytest.mark.parametrize( + "mapper", + [ + lambda values, idx: {i: e for e, i in zip(values, idx)}, + lambda values, idx: pd.Series(values, idx), + ], +) +def test_map_dictlike(idx, mapper): + identity = mapper(idx.values, idx) + + # we don't infer to uint64 dtype for a dict + if idx.dtype == np.uint64 and isinstance(identity, dict): + expected = idx.astype("int64") + else: + expected = idx + + result = idx.map(identity) + tm.assert_index_equal(result, expected) + + # empty mappable + expected = Index([np.nan] * len(idx)) + result = idx.map(mapper(expected, idx)) + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize( + "func", + [ + np.exp, + np.exp2, + np.expm1, + np.log, + np.log2, + np.log10, + np.log1p, + np.sqrt, + np.sin, + np.cos, + np.tan, + np.arcsin, + np.arccos, + np.arctan, + np.sinh, + np.cosh, + np.tanh, + np.arcsinh, + np.arccosh, + np.arctanh, + np.deg2rad, + np.rad2deg, + ], + ids=lambda func: func.__name__, +) +def test_numpy_ufuncs(idx, func): + # test ufuncs of numpy. see: + # https://numpy.org/doc/stable/reference/ufuncs.html + + expected_exception = TypeError + msg = ( + "loop of ufunc does not support argument 0 of type tuple which " + f"has no callable {func.__name__} method" + ) + with pytest.raises(expected_exception, match=msg): + func(idx) + + +@pytest.mark.parametrize( + "func", + [np.isfinite, np.isinf, np.isnan, np.signbit], + ids=lambda func: func.__name__, +) +def test_numpy_type_funcs(idx, func): + msg = ( + f"ufunc '{func.__name__}' not supported for the input types, and the inputs " + "could not be safely coerced to any supported types according to " + "the casting rule ''safe''" + ) + with pytest.raises(TypeError, match=msg): + func(idx) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_astype.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_astype.py new file mode 100644 index 0000000000000000000000000000000000000000..29908537fbe590328ac586e05f90f3cc24cab9ab --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_astype.py @@ -0,0 +1,30 @@ +import numpy as np +import pytest + +from pandas.core.dtypes.dtypes import CategoricalDtype + +import pandas._testing as tm + + +def test_astype(idx): + expected = idx.copy() + actual = idx.astype("O") + tm.assert_copy(actual.levels, expected.levels) + tm.assert_copy(actual.codes, expected.codes) + assert actual.names == list(expected.names) + + with pytest.raises(TypeError, match="^Setting.*dtype.*object"): + idx.astype(np.dtype(int)) + + +@pytest.mark.parametrize("ordered", [True, False]) +def test_astype_category(idx, ordered): + # GH 18630 + msg = "> 1 ndim Categorical are not supported at this time" + with pytest.raises(NotImplementedError, match=msg): + idx.astype(CategoricalDtype(ordered=ordered)) + + if ordered is False: + # dtype='category' defaults to ordered=False, so only test once + with pytest.raises(NotImplementedError, match=msg): + idx.astype("category") diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_compat.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_compat.py new file mode 100644 index 0000000000000000000000000000000000000000..27a8c6e9b715880a57e711e8eab457ae553a4867 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_compat.py @@ -0,0 +1,122 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import MultiIndex +import pandas._testing as tm + + +def test_numeric_compat(idx): + with pytest.raises(TypeError, match="cannot perform __mul__"): + idx * 1 + + with pytest.raises(TypeError, match="cannot perform __rmul__"): + 1 * idx + + div_err = "cannot perform __truediv__" + with pytest.raises(TypeError, match=div_err): + idx / 1 + + div_err = div_err.replace(" __", " __r") + with pytest.raises(TypeError, match=div_err): + 1 / idx + + with pytest.raises(TypeError, match="cannot perform __floordiv__"): + idx // 1 + + with pytest.raises(TypeError, match="cannot perform __rfloordiv__"): + 1 // idx + + +@pytest.mark.parametrize("method", ["all", "any", "__invert__"]) +def test_logical_compat(idx, method): + msg = f"cannot perform {method}" + + with pytest.raises(TypeError, match=msg): + getattr(idx, method)() + + +def test_inplace_mutation_resets_values(): + levels = [["a", "b", "c"], [4]] + levels2 = [[1, 2, 3], ["a"]] + codes = [[0, 1, 0, 2, 2, 0], [0, 0, 0, 0, 0, 0]] + + mi1 = MultiIndex(levels=levels, codes=codes) + mi2 = MultiIndex(levels=levels2, codes=codes) + + # instantiating MultiIndex should not access/cache _.values + assert "_values" not in mi1._cache + assert "_values" not in mi2._cache + + vals = mi1.values.copy() + vals2 = mi2.values.copy() + + # accessing .values should cache ._values + assert mi1._values is mi1._cache["_values"] + assert mi1.values is mi1._cache["_values"] + assert isinstance(mi1._cache["_values"], np.ndarray) + + # Make sure level setting works + new_vals = mi1.set_levels(levels2).values + tm.assert_almost_equal(vals2, new_vals) + + # Doesn't drop _values from _cache [implementation detail] + tm.assert_almost_equal(mi1._cache["_values"], vals) + + # ...and values is still same too + tm.assert_almost_equal(mi1.values, vals) + + # Make sure label setting works too + codes2 = [[0, 0, 0, 0, 0, 0], [0, 0, 0, 0, 0, 0]] + exp_values = np.empty((6,), dtype=object) + exp_values[:] = [(1, "a")] * 6 + + # Must be 1d array of tuples + assert exp_values.shape == (6,) + + new_mi = mi2.set_codes(codes2) + assert "_values" not in new_mi._cache + new_values = new_mi.values + assert "_values" in new_mi._cache + + # Shouldn't change cache + tm.assert_almost_equal(mi2._cache["_values"], vals2) + + # Should have correct values + tm.assert_almost_equal(exp_values, new_values) + + +def test_boxable_categorical_values(): + cat = pd.Categorical(pd.date_range("2012-01-01", periods=3, freq="h")) + result = MultiIndex.from_product([["a", "b", "c"], cat]).values + expected = pd.Series( + [ + ("a", pd.Timestamp("2012-01-01 00:00:00")), + ("a", pd.Timestamp("2012-01-01 01:00:00")), + ("a", pd.Timestamp("2012-01-01 02:00:00")), + ("b", pd.Timestamp("2012-01-01 00:00:00")), + ("b", pd.Timestamp("2012-01-01 01:00:00")), + ("b", pd.Timestamp("2012-01-01 02:00:00")), + ("c", pd.Timestamp("2012-01-01 00:00:00")), + ("c", pd.Timestamp("2012-01-01 01:00:00")), + ("c", pd.Timestamp("2012-01-01 02:00:00")), + ] + ).values + tm.assert_numpy_array_equal(result, expected) + result = pd.DataFrame({"a": ["a", "b", "c"], "b": cat, "c": np.array(cat)}).values + expected = pd.DataFrame( + { + "a": ["a", "b", "c"], + "b": [ + pd.Timestamp("2012-01-01 00:00:00"), + pd.Timestamp("2012-01-01 01:00:00"), + pd.Timestamp("2012-01-01 02:00:00"), + ], + "c": [ + pd.Timestamp("2012-01-01 00:00:00"), + pd.Timestamp("2012-01-01 01:00:00"), + pd.Timestamp("2012-01-01 02:00:00"), + ], + } + ).values + tm.assert_numpy_array_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_constructors.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_constructors.py new file mode 100644 index 0000000000000000000000000000000000000000..b1180f2d7af145dd30592925bfd16a4c2484a88f --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_constructors.py @@ -0,0 +1,860 @@ +from datetime import ( + date, + datetime, +) +import itertools + +import numpy as np +import pytest + +from pandas.core.dtypes.cast import construct_1d_object_array_from_listlike + +import pandas as pd +from pandas import ( + Index, + MultiIndex, + Series, + Timestamp, + date_range, +) +import pandas._testing as tm + + +def test_constructor_single_level(): + result = MultiIndex( + levels=[["foo", "bar", "baz", "qux"]], codes=[[0, 1, 2, 3]], names=["first"] + ) + assert isinstance(result, MultiIndex) + expected = Index(["foo", "bar", "baz", "qux"], name="first") + tm.assert_index_equal(result.levels[0], expected) + assert result.names == ["first"] + + +def test_constructor_no_levels(): + msg = "non-zero number of levels/codes" + with pytest.raises(ValueError, match=msg): + MultiIndex(levels=[], codes=[]) + + msg = "Must pass both levels and codes" + with pytest.raises(TypeError, match=msg): + MultiIndex(levels=[]) + with pytest.raises(TypeError, match=msg): + MultiIndex(codes=[]) + + +def test_constructor_nonhashable_names(): + # GH 20527 + levels = [[1, 2], ["one", "two"]] + codes = [[0, 0, 1, 1], [0, 1, 0, 1]] + names = (["foo"], ["bar"]) + msg = r"MultiIndex\.name must be a hashable type" + with pytest.raises(TypeError, match=msg): + MultiIndex(levels=levels, codes=codes, names=names) + + # With .rename() + mi = MultiIndex( + levels=[[1, 2], ["one", "two"]], + codes=[[0, 0, 1, 1], [0, 1, 0, 1]], + names=("foo", "bar"), + ) + renamed = [["fooo"], ["barr"]] + with pytest.raises(TypeError, match=msg): + mi.rename(names=renamed) + + # With .set_names() + with pytest.raises(TypeError, match=msg): + mi.set_names(names=renamed) + + +def test_constructor_mismatched_codes_levels(idx): + codes = [np.array([1]), np.array([2]), np.array([3])] + levels = ["a"] + + msg = "Length of levels and codes must be the same" + with pytest.raises(ValueError, match=msg): + MultiIndex(levels=levels, codes=codes) + + length_error = ( + r"On level 0, code max \(3\) >= length of level \(1\)\. " + "NOTE: this index is in an inconsistent state" + ) + label_error = r"Unequal code lengths: \[4, 2\]" + code_value_error = r"On level 0, code value \(-2\) < -1" + + # important to check that it's looking at the right thing. + with pytest.raises(ValueError, match=length_error): + MultiIndex(levels=[["a"], ["b"]], codes=[[0, 1, 2, 3], [0, 3, 4, 1]]) + + with pytest.raises(ValueError, match=label_error): + MultiIndex(levels=[["a"], ["b"]], codes=[[0, 0, 0, 0], [0, 0]]) + + # external API + with pytest.raises(ValueError, match=length_error): + idx.copy().set_levels([["a"], ["b"]]) + + with pytest.raises(ValueError, match=label_error): + idx.copy().set_codes([[0, 0, 0, 0], [0, 0]]) + + # test set_codes with verify_integrity=False + # the setting should not raise any value error + idx.copy().set_codes(codes=[[0, 0, 0, 0], [0, 0]], verify_integrity=False) + + # code value smaller than -1 + with pytest.raises(ValueError, match=code_value_error): + MultiIndex(levels=[["a"], ["b"]], codes=[[0, -2], [0, 0]]) + + +def test_na_levels(): + # GH26408 + # test if codes are re-assigned value -1 for levels + # with missing values (NaN, NaT, None) + result = MultiIndex( + levels=[[np.nan, None, pd.NaT, 128, 2]], codes=[[0, -1, 1, 2, 3, 4]] + ) + expected = MultiIndex( + levels=[[np.nan, None, pd.NaT, 128, 2]], codes=[[-1, -1, -1, -1, 3, 4]] + ) + tm.assert_index_equal(result, expected) + + result = MultiIndex( + levels=[[np.nan, "s", pd.NaT, 128, None]], codes=[[0, -1, 1, 2, 3, 4]] + ) + expected = MultiIndex( + levels=[[np.nan, "s", pd.NaT, 128, None]], codes=[[-1, -1, 1, -1, 3, -1]] + ) + tm.assert_index_equal(result, expected) + + # verify set_levels and set_codes + result = MultiIndex( + levels=[[1, 2, 3, 4, 5]], codes=[[0, -1, 1, 2, 3, 4]] + ).set_levels([[np.nan, "s", pd.NaT, 128, None]]) + tm.assert_index_equal(result, expected) + + result = MultiIndex( + levels=[[np.nan, "s", pd.NaT, 128, None]], codes=[[1, 2, 2, 2, 2, 2]] + ).set_codes([[0, -1, 1, 2, 3, 4]]) + tm.assert_index_equal(result, expected) + + +def test_copy_in_constructor(): + levels = np.array(["a", "b", "c"]) + codes = np.array([1, 1, 2, 0, 0, 1, 1]) + val = codes[0] + mi = MultiIndex(levels=[levels, levels], codes=[codes, codes], copy=True) + assert mi.codes[0][0] == val + codes[0] = 15 + assert mi.codes[0][0] == val + val = levels[0] + levels[0] = "PANDA" + assert mi.levels[0][0] == val + + +# ---------------------------------------------------------------------------- +# from_arrays +# ---------------------------------------------------------------------------- +def test_from_arrays(idx): + arrays = [ + np.asarray(lev).take(level_codes) + for lev, level_codes in zip(idx.levels, idx.codes) + ] + + # list of arrays as input + result = MultiIndex.from_arrays(arrays, names=idx.names) + tm.assert_index_equal(result, idx) + + # infer correctly + result = MultiIndex.from_arrays([[pd.NaT, Timestamp("20130101")], ["a", "b"]]) + assert result.levels[0].equals(Index([Timestamp("20130101")])) + assert result.levels[1].equals(Index(["a", "b"])) + + +def test_from_arrays_iterator(idx): + # GH 18434 + arrays = [ + np.asarray(lev).take(level_codes) + for lev, level_codes in zip(idx.levels, idx.codes) + ] + + # iterator as input + result = MultiIndex.from_arrays(iter(arrays), names=idx.names) + tm.assert_index_equal(result, idx) + + # invalid iterator input + msg = "Input must be a list / sequence of array-likes." + with pytest.raises(TypeError, match=msg): + MultiIndex.from_arrays(0) + + +def test_from_arrays_tuples(idx): + arrays = tuple( + tuple(np.asarray(lev).take(level_codes)) + for lev, level_codes in zip(idx.levels, idx.codes) + ) + + # tuple of tuples as input + result = MultiIndex.from_arrays(arrays, names=idx.names) + tm.assert_index_equal(result, idx) + + +@pytest.mark.parametrize( + ("idx1", "idx2"), + [ + ( + pd.period_range("2011-01-01", freq="D", periods=3), + pd.period_range("2015-01-01", freq="h", periods=3), + ), + ( + date_range("2015-01-01 10:00", freq="D", periods=3, tz="US/Eastern"), + date_range("2015-01-01 10:00", freq="h", periods=3, tz="Asia/Tokyo"), + ), + ( + pd.timedelta_range("1 days", freq="D", periods=3), + pd.timedelta_range("2 hours", freq="h", periods=3), + ), + ], +) +def test_from_arrays_index_series_period_datetimetz_and_timedelta(idx1, idx2): + result = MultiIndex.from_arrays([idx1, idx2]) + tm.assert_index_equal(result.get_level_values(0), idx1) + tm.assert_index_equal(result.get_level_values(1), idx2) + + result2 = MultiIndex.from_arrays([Series(idx1), Series(idx2)]) + tm.assert_index_equal(result2.get_level_values(0), idx1) + tm.assert_index_equal(result2.get_level_values(1), idx2) + + tm.assert_index_equal(result, result2) + + +def test_from_arrays_index_datetimelike_mixed(): + idx1 = date_range("2015-01-01 10:00", freq="D", periods=3, tz="US/Eastern") + idx2 = date_range("2015-01-01 10:00", freq="h", periods=3) + idx3 = pd.timedelta_range("1 days", freq="D", periods=3) + idx4 = pd.period_range("2011-01-01", freq="D", periods=3) + + result = MultiIndex.from_arrays([idx1, idx2, idx3, idx4]) + tm.assert_index_equal(result.get_level_values(0), idx1) + tm.assert_index_equal(result.get_level_values(1), idx2) + tm.assert_index_equal(result.get_level_values(2), idx3) + tm.assert_index_equal(result.get_level_values(3), idx4) + + result2 = MultiIndex.from_arrays( + [Series(idx1), Series(idx2), Series(idx3), Series(idx4)] + ) + tm.assert_index_equal(result2.get_level_values(0), idx1) + tm.assert_index_equal(result2.get_level_values(1), idx2) + tm.assert_index_equal(result2.get_level_values(2), idx3) + tm.assert_index_equal(result2.get_level_values(3), idx4) + + tm.assert_index_equal(result, result2) + + +def test_from_arrays_index_series_categorical(): + # GH13743 + idx1 = pd.CategoricalIndex(list("abcaab"), categories=list("bac"), ordered=False) + idx2 = pd.CategoricalIndex(list("abcaab"), categories=list("bac"), ordered=True) + + result = MultiIndex.from_arrays([idx1, idx2]) + tm.assert_index_equal(result.get_level_values(0), idx1) + tm.assert_index_equal(result.get_level_values(1), idx2) + + result2 = MultiIndex.from_arrays([Series(idx1), Series(idx2)]) + tm.assert_index_equal(result2.get_level_values(0), idx1) + tm.assert_index_equal(result2.get_level_values(1), idx2) + + result3 = MultiIndex.from_arrays([idx1.values, idx2.values]) + tm.assert_index_equal(result3.get_level_values(0), idx1) + tm.assert_index_equal(result3.get_level_values(1), idx2) + + +def test_from_arrays_empty(): + # 0 levels + msg = "Must pass non-zero number of levels/codes" + with pytest.raises(ValueError, match=msg): + MultiIndex.from_arrays(arrays=[]) + + # 1 level + result = MultiIndex.from_arrays(arrays=[[]], names=["A"]) + assert isinstance(result, MultiIndex) + expected = Index([], name="A") + tm.assert_index_equal(result.levels[0], expected) + assert result.names == ["A"] + + # N levels + for N in [2, 3]: + arrays = [[]] * N + names = list("ABC")[:N] + result = MultiIndex.from_arrays(arrays=arrays, names=names) + expected = MultiIndex(levels=[[]] * N, codes=[[]] * N, names=names) + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize( + "invalid_sequence_of_arrays", + [ + 1, + [1], + [1, 2], + [[1], 2], + [1, [2]], + "a", + ["a"], + ["a", "b"], + [["a"], "b"], + (1,), + (1, 2), + ([1], 2), + (1, [2]), + "a", + ("a",), + ("a", "b"), + (["a"], "b"), + [(1,), 2], + [1, (2,)], + [("a",), "b"], + ((1,), 2), + (1, (2,)), + (("a",), "b"), + ], +) +def test_from_arrays_invalid_input(invalid_sequence_of_arrays): + msg = "Input must be a list / sequence of array-likes" + with pytest.raises(TypeError, match=msg): + MultiIndex.from_arrays(arrays=invalid_sequence_of_arrays) + + +@pytest.mark.parametrize( + "idx1, idx2", [([1, 2, 3], ["a", "b"]), ([], ["a", "b"]), ([1, 2, 3], [])] +) +def test_from_arrays_different_lengths(idx1, idx2): + # see gh-13599 + msg = "^all arrays must be same length$" + with pytest.raises(ValueError, match=msg): + MultiIndex.from_arrays([idx1, idx2]) + + +def test_from_arrays_respects_none_names(): + # GH27292 + a = Series([1, 2, 3], name="foo") + b = Series(["a", "b", "c"], name="bar") + + result = MultiIndex.from_arrays([a, b], names=None) + expected = MultiIndex( + levels=[[1, 2, 3], ["a", "b", "c"]], codes=[[0, 1, 2], [0, 1, 2]], names=None + ) + + tm.assert_index_equal(result, expected) + + +# ---------------------------------------------------------------------------- +# from_tuples +# ---------------------------------------------------------------------------- +def test_from_tuples(): + msg = "Cannot infer number of levels from empty list" + with pytest.raises(TypeError, match=msg): + MultiIndex.from_tuples([]) + + expected = MultiIndex( + levels=[[1, 3], [2, 4]], codes=[[0, 1], [0, 1]], names=["a", "b"] + ) + + # input tuples + result = MultiIndex.from_tuples(((1, 2), (3, 4)), names=["a", "b"]) + tm.assert_index_equal(result, expected) + + +def test_from_tuples_iterator(): + # GH 18434 + # input iterator for tuples + expected = MultiIndex( + levels=[[1, 3], [2, 4]], codes=[[0, 1], [0, 1]], names=["a", "b"] + ) + + result = MultiIndex.from_tuples(zip([1, 3], [2, 4]), names=["a", "b"]) + tm.assert_index_equal(result, expected) + + # input non-iterables + msg = "Input must be a list / sequence of tuple-likes." + with pytest.raises(TypeError, match=msg): + MultiIndex.from_tuples(0) + + +def test_from_tuples_empty(): + # GH 16777 + result = MultiIndex.from_tuples([], names=["a", "b"]) + expected = MultiIndex.from_arrays(arrays=[[], []], names=["a", "b"]) + tm.assert_index_equal(result, expected) + + +def test_from_tuples_index_values(idx): + result = MultiIndex.from_tuples(idx) + assert (result.values == idx.values).all() + + +def test_tuples_with_name_string(): + # GH 15110 and GH 14848 + + li = [(0, 0, 1), (0, 1, 0), (1, 0, 0)] + msg = "Names should be list-like for a MultiIndex" + with pytest.raises(ValueError, match=msg): + Index(li, name="abc") + with pytest.raises(ValueError, match=msg): + Index(li, name="a") + + +def test_from_tuples_with_tuple_label(): + # GH 15457 + expected = pd.DataFrame( + [[2, 1, 2], [4, (1, 2), 3]], columns=["a", "b", "c"] + ).set_index(["a", "b"]) + idx = MultiIndex.from_tuples([(2, 1), (4, (1, 2))], names=("a", "b")) + result = pd.DataFrame([2, 3], columns=["c"], index=idx) + tm.assert_frame_equal(expected, result) + + +# ---------------------------------------------------------------------------- +# from_product +# ---------------------------------------------------------------------------- +def test_from_product_empty_zero_levels(): + # 0 levels + msg = "Must pass non-zero number of levels/codes" + with pytest.raises(ValueError, match=msg): + MultiIndex.from_product([]) + + +def test_from_product_empty_one_level(): + result = MultiIndex.from_product([[]], names=["A"]) + expected = Index([], name="A") + tm.assert_index_equal(result.levels[0], expected) + assert result.names == ["A"] + + +@pytest.mark.parametrize( + "first, second", [([], []), (["foo", "bar", "baz"], []), ([], ["a", "b", "c"])] +) +def test_from_product_empty_two_levels(first, second): + names = ["A", "B"] + result = MultiIndex.from_product([first, second], names=names) + expected = MultiIndex(levels=[first, second], codes=[[], []], names=names) + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize("N", list(range(4))) +def test_from_product_empty_three_levels(N): + # GH12258 + names = ["A", "B", "C"] + lvl2 = list(range(N)) + result = MultiIndex.from_product([[], lvl2, []], names=names) + expected = MultiIndex(levels=[[], lvl2, []], codes=[[], [], []], names=names) + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize( + "invalid_input", [1, [1], [1, 2], [[1], 2], "a", ["a"], ["a", "b"], [["a"], "b"]] +) +def test_from_product_invalid_input(invalid_input): + msg = r"Input must be a list / sequence of iterables|Input must be list-like" + with pytest.raises(TypeError, match=msg): + MultiIndex.from_product(iterables=invalid_input) + + +def test_from_product_datetimeindex(): + dt_index = date_range("2000-01-01", periods=2) + mi = MultiIndex.from_product([[1, 2], dt_index]) + etalon = construct_1d_object_array_from_listlike( + [ + (1, Timestamp("2000-01-01")), + (1, Timestamp("2000-01-02")), + (2, Timestamp("2000-01-01")), + (2, Timestamp("2000-01-02")), + ] + ) + tm.assert_numpy_array_equal(mi.values, etalon) + + +def test_from_product_rangeindex(): + # RangeIndex is preserved by factorize, so preserved in levels + rng = Index(range(5)) + other = ["a", "b"] + mi = MultiIndex.from_product([rng, other]) + tm.assert_index_equal(mi._levels[0], rng, exact=True) + + +@pytest.mark.parametrize("ordered", [False, True]) +@pytest.mark.parametrize("f", [lambda x: x, lambda x: Series(x), lambda x: x.values]) +def test_from_product_index_series_categorical(ordered, f): + # GH13743 + first = ["foo", "bar"] + + idx = pd.CategoricalIndex(list("abcaab"), categories=list("bac"), ordered=ordered) + expected = pd.CategoricalIndex( + list("abcaab") + list("abcaab"), categories=list("bac"), ordered=ordered + ) + + result = MultiIndex.from_product([first, f(idx)]) + tm.assert_index_equal(result.get_level_values(1), expected) + + +def test_from_product(): + first = ["foo", "bar", "buz"] + second = ["a", "b", "c"] + names = ["first", "second"] + result = MultiIndex.from_product([first, second], names=names) + + tuples = [ + ("foo", "a"), + ("foo", "b"), + ("foo", "c"), + ("bar", "a"), + ("bar", "b"), + ("bar", "c"), + ("buz", "a"), + ("buz", "b"), + ("buz", "c"), + ] + expected = MultiIndex.from_tuples(tuples, names=names) + + tm.assert_index_equal(result, expected) + + +def test_from_product_iterator(): + # GH 18434 + first = ["foo", "bar", "buz"] + second = ["a", "b", "c"] + names = ["first", "second"] + tuples = [ + ("foo", "a"), + ("foo", "b"), + ("foo", "c"), + ("bar", "a"), + ("bar", "b"), + ("bar", "c"), + ("buz", "a"), + ("buz", "b"), + ("buz", "c"), + ] + expected = MultiIndex.from_tuples(tuples, names=names) + + # iterator as input + result = MultiIndex.from_product(iter([first, second]), names=names) + tm.assert_index_equal(result, expected) + + # Invalid non-iterable input + msg = "Input must be a list / sequence of iterables." + with pytest.raises(TypeError, match=msg): + MultiIndex.from_product(0) + + +@pytest.mark.parametrize( + "a, b, expected_names", + [ + ( + Series([1, 2, 3], name="foo"), + Series(["a", "b"], name="bar"), + ["foo", "bar"], + ), + (Series([1, 2, 3], name="foo"), ["a", "b"], ["foo", None]), + ([1, 2, 3], ["a", "b"], None), + ], +) +def test_from_product_infer_names(a, b, expected_names): + # GH27292 + result = MultiIndex.from_product([a, b]) + expected = MultiIndex( + levels=[[1, 2, 3], ["a", "b"]], + codes=[[0, 0, 1, 1, 2, 2], [0, 1, 0, 1, 0, 1]], + names=expected_names, + ) + tm.assert_index_equal(result, expected) + + +def test_from_product_respects_none_names(): + # GH27292 + a = Series([1, 2, 3], name="foo") + b = Series(["a", "b"], name="bar") + + result = MultiIndex.from_product([a, b], names=None) + expected = MultiIndex( + levels=[[1, 2, 3], ["a", "b"]], + codes=[[0, 0, 1, 1, 2, 2], [0, 1, 0, 1, 0, 1]], + names=None, + ) + tm.assert_index_equal(result, expected) + + +def test_from_product_readonly(): + # GH#15286 passing read-only array to from_product + a = np.array(range(3)) + b = ["a", "b"] + expected = MultiIndex.from_product([a, b]) + + a.setflags(write=False) + result = MultiIndex.from_product([a, b]) + tm.assert_index_equal(result, expected) + + +def test_create_index_existing_name(idx): + # GH11193, when an existing index is passed, and a new name is not + # specified, the new index should inherit the previous object name + index = idx + index.names = ["foo", "bar"] + result = Index(index) + expected = Index( + Index( + [ + ("foo", "one"), + ("foo", "two"), + ("bar", "one"), + ("baz", "two"), + ("qux", "one"), + ("qux", "two"), + ], + dtype="object", + ) + ) + tm.assert_index_equal(result, expected) + + result = Index(index, name="A") + expected = Index( + Index( + [ + ("foo", "one"), + ("foo", "two"), + ("bar", "one"), + ("baz", "two"), + ("qux", "one"), + ("qux", "two"), + ], + dtype="object", + ), + name="A", + ) + tm.assert_index_equal(result, expected) + + +# ---------------------------------------------------------------------------- +# from_frame +# ---------------------------------------------------------------------------- +def test_from_frame(): + # GH 22420 + df = pd.DataFrame( + [["a", "a"], ["a", "b"], ["b", "a"], ["b", "b"]], columns=["L1", "L2"] + ) + expected = MultiIndex.from_tuples( + [("a", "a"), ("a", "b"), ("b", "a"), ("b", "b")], names=["L1", "L2"] + ) + result = MultiIndex.from_frame(df) + tm.assert_index_equal(expected, result) + + +def test_from_frame_missing_values_multiIndex(): + # GH 39984 + pa = pytest.importorskip("pyarrow") + + df = pd.DataFrame( + { + "a": Series([1, 2, None], dtype="Int64"), + "b": pd.Float64Dtype().__from_arrow__(pa.array([0.2, np.nan, None])), + } + ) + multi_indexed = MultiIndex.from_frame(df) + expected = MultiIndex.from_arrays( + [ + Series([1, 2, None]).astype("Int64"), + pd.Float64Dtype().__from_arrow__(pa.array([0.2, np.nan, None])), + ], + names=["a", "b"], + ) + tm.assert_index_equal(multi_indexed, expected) + + +@pytest.mark.parametrize( + "non_frame", + [ + Series([1, 2, 3, 4]), + [1, 2, 3, 4], + [[1, 2], [3, 4], [5, 6]], + Index([1, 2, 3, 4]), + np.array([[1, 2], [3, 4], [5, 6]]), + 27, + ], +) +def test_from_frame_error(non_frame): + # GH 22420 + with pytest.raises(TypeError, match="Input must be a DataFrame"): + MultiIndex.from_frame(non_frame) + + +def test_from_frame_dtype_fidelity(): + # GH 22420 + df = pd.DataFrame( + { + "dates": date_range("19910905", periods=6, tz="US/Eastern"), + "a": [1, 1, 1, 2, 2, 2], + "b": pd.Categorical(["a", "a", "b", "b", "c", "c"], ordered=True), + "c": ["x", "x", "y", "z", "x", "y"], + } + ) + original_dtypes = df.dtypes.to_dict() + + expected_mi = MultiIndex.from_arrays( + [ + date_range("19910905", periods=6, tz="US/Eastern"), + [1, 1, 1, 2, 2, 2], + pd.Categorical(["a", "a", "b", "b", "c", "c"], ordered=True), + ["x", "x", "y", "z", "x", "y"], + ], + names=["dates", "a", "b", "c"], + ) + mi = MultiIndex.from_frame(df) + mi_dtypes = {name: mi.levels[i].dtype for i, name in enumerate(mi.names)} + + tm.assert_index_equal(expected_mi, mi) + assert original_dtypes == mi_dtypes + + +@pytest.mark.parametrize( + "names_in,names_out", [(None, [("L1", "x"), ("L2", "y")]), (["x", "y"], ["x", "y"])] +) +def test_from_frame_valid_names(names_in, names_out): + # GH 22420 + df = pd.DataFrame( + [["a", "a"], ["a", "b"], ["b", "a"], ["b", "b"]], + columns=MultiIndex.from_tuples([("L1", "x"), ("L2", "y")]), + ) + mi = MultiIndex.from_frame(df, names=names_in) + assert mi.names == names_out + + +@pytest.mark.parametrize( + "names,expected_error_msg", + [ + ("bad_input", "Names should be list-like for a MultiIndex"), + (["a", "b", "c"], "Length of names must match number of levels in MultiIndex"), + ], +) +def test_from_frame_invalid_names(names, expected_error_msg): + # GH 22420 + df = pd.DataFrame( + [["a", "a"], ["a", "b"], ["b", "a"], ["b", "b"]], + columns=MultiIndex.from_tuples([("L1", "x"), ("L2", "y")]), + ) + with pytest.raises(ValueError, match=expected_error_msg): + MultiIndex.from_frame(df, names=names) + + +def test_index_equal_empty_iterable(): + # #16844 + a = MultiIndex(levels=[[], []], codes=[[], []], names=["a", "b"]) + b = MultiIndex.from_arrays(arrays=[[], []], names=["a", "b"]) + tm.assert_index_equal(a, b) + + +def test_raise_invalid_sortorder(): + # Test that the MultiIndex constructor raise when a incorrect sortorder is given + # GH#28518 + + levels = [[0, 1], [0, 1, 2]] + + # Correct sortorder + MultiIndex( + levels=levels, codes=[[0, 0, 0, 1, 1, 1], [0, 1, 2, 0, 1, 2]], sortorder=2 + ) + + with pytest.raises(ValueError, match=r".* sortorder 2 with lexsort_depth 1.*"): + MultiIndex( + levels=levels, codes=[[0, 0, 0, 1, 1, 1], [0, 1, 2, 0, 2, 1]], sortorder=2 + ) + + with pytest.raises(ValueError, match=r".* sortorder 1 with lexsort_depth 0.*"): + MultiIndex( + levels=levels, codes=[[0, 0, 1, 0, 1, 1], [0, 1, 0, 2, 2, 1]], sortorder=1 + ) + + +def test_datetimeindex(): + idx1 = pd.DatetimeIndex( + ["2013-04-01 9:00", "2013-04-02 9:00", "2013-04-03 9:00"] * 2, tz="Asia/Tokyo" + ) + idx2 = date_range("2010/01/01", periods=6, freq="ME", tz="US/Eastern") + idx = MultiIndex.from_arrays([idx1, idx2]) + + expected1 = pd.DatetimeIndex( + ["2013-04-01 9:00", "2013-04-02 9:00", "2013-04-03 9:00"], tz="Asia/Tokyo" + ) + + tm.assert_index_equal(idx.levels[0], expected1) + tm.assert_index_equal(idx.levels[1], idx2) + + # from datetime combos + # GH 7888 + date1 = np.datetime64("today") + date2 = datetime.today() + date3 = Timestamp.today() + + for d1, d2 in itertools.product([date1, date2, date3], [date1, date2, date3]): + index = MultiIndex.from_product([[d1], [d2]]) + assert isinstance(index.levels[0], pd.DatetimeIndex) + assert isinstance(index.levels[1], pd.DatetimeIndex) + + # but NOT date objects, matching Index behavior + date4 = date.today() + index = MultiIndex.from_product([[date4], [date2]]) + assert not isinstance(index.levels[0], pd.DatetimeIndex) + assert isinstance(index.levels[1], pd.DatetimeIndex) + + +def test_constructor_with_tz(): + index = pd.DatetimeIndex( + ["2013/01/01 09:00", "2013/01/02 09:00"], name="dt1", tz="US/Pacific" + ) + columns = pd.DatetimeIndex( + ["2014/01/01 09:00", "2014/01/02 09:00"], name="dt2", tz="Asia/Tokyo" + ) + + result = MultiIndex.from_arrays([index, columns]) + + assert result.names == ["dt1", "dt2"] + tm.assert_index_equal(result.levels[0], index) + tm.assert_index_equal(result.levels[1], columns) + + result = MultiIndex.from_arrays([Series(index), Series(columns)]) + + assert result.names == ["dt1", "dt2"] + tm.assert_index_equal(result.levels[0], index) + tm.assert_index_equal(result.levels[1], columns) + + +def test_multiindex_inference_consistency(): + # check that inference behavior matches the base class + + v = date.today() + + arr = [v, v] + + idx = Index(arr) + assert idx.dtype == object + + mi = MultiIndex.from_arrays([arr]) + lev = mi.levels[0] + assert lev.dtype == object + + mi = MultiIndex.from_product([arr]) + lev = mi.levels[0] + assert lev.dtype == object + + mi = MultiIndex.from_tuples([(x,) for x in arr]) + lev = mi.levels[0] + assert lev.dtype == object + + +def test_dtype_representation(using_infer_string): + # GH#46900 + pmidx = MultiIndex.from_arrays([[1], ["a"]], names=[("a", "b"), ("c", "d")]) + result = pmidx.dtypes + exp = "object" if not using_infer_string else pd.StringDtype(na_value=np.nan) + expected = Series( + ["int64", exp], + index=MultiIndex.from_tuples([("a", "b"), ("c", "d")]), + dtype=object, + ) + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_conversion.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_conversion.py new file mode 100644 index 0000000000000000000000000000000000000000..d62bd5438a1e39e2a371b731f7b74c48cd0cc3e3 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_conversion.py @@ -0,0 +1,201 @@ +import numpy as np +import pytest + +from pandas.compat.numpy import np_version_gt2 + +import pandas as pd +from pandas import ( + DataFrame, + MultiIndex, +) +import pandas._testing as tm + + +def test_to_numpy(idx): + result = idx.to_numpy() + exp = idx.values + tm.assert_numpy_array_equal(result, exp) + + +def test_array_interface(idx): + # https://github.com/pandas-dev/pandas/pull/60046 + result = np.asarray(idx) + expected = np.empty((6,), dtype=object) + expected[:] = [ + ("foo", "one"), + ("foo", "two"), + ("bar", "one"), + ("baz", "two"), + ("qux", "one"), + ("qux", "two"), + ] + tm.assert_numpy_array_equal(result, expected) + + # it always gives a copy by default, but the values are cached, so results + # are still sharing memory + result_copy1 = np.asarray(idx) + result_copy2 = np.asarray(idx) + assert np.may_share_memory(result_copy1, result_copy2) + + # with explicit copy=True, then it is an actual copy + result_copy1 = np.array(idx, copy=True) + result_copy2 = np.array(idx, copy=True) + assert not np.may_share_memory(result_copy1, result_copy2) + + if not np_version_gt2: + # copy=False semantics are only supported in NumPy>=2. + return + + # for MultiIndex, copy=False is never allowed + msg = "Starting with NumPy 2.0, the behavior of the 'copy' keyword has changed" + with tm.assert_produces_warning(FutureWarning, match=msg): + np.array(idx, copy=False) + + +def test_to_frame(): + tuples = [(1, "one"), (1, "two"), (2, "one"), (2, "two")] + + index = MultiIndex.from_tuples(tuples) + result = index.to_frame(index=False) + expected = DataFrame(tuples) + tm.assert_frame_equal(result, expected) + + result = index.to_frame() + expected.index = index + tm.assert_frame_equal(result, expected) + + tuples = [(1, "one"), (1, "two"), (2, "one"), (2, "two")] + index = MultiIndex.from_tuples(tuples, names=["first", "second"]) + result = index.to_frame(index=False) + expected = DataFrame(tuples) + expected.columns = ["first", "second"] + tm.assert_frame_equal(result, expected) + + result = index.to_frame() + expected.index = index + tm.assert_frame_equal(result, expected) + + # See GH-22580 + index = MultiIndex.from_tuples(tuples) + result = index.to_frame(index=False, name=["first", "second"]) + expected = DataFrame(tuples) + expected.columns = ["first", "second"] + tm.assert_frame_equal(result, expected) + + result = index.to_frame(name=["first", "second"]) + expected.index = index + expected.columns = ["first", "second"] + tm.assert_frame_equal(result, expected) + + msg = "'name' must be a list / sequence of column names." + with pytest.raises(TypeError, match=msg): + index.to_frame(name="first") + + msg = "'name' should have same length as number of levels on index." + with pytest.raises(ValueError, match=msg): + index.to_frame(name=["first"]) + + # Tests for datetime index + index = MultiIndex.from_product([range(5), pd.date_range("20130101", periods=3)]) + result = index.to_frame(index=False) + expected = DataFrame( + { + 0: np.repeat(np.arange(5, dtype="int64"), 3), + 1: np.tile(pd.date_range("20130101", periods=3), 5), + } + ) + tm.assert_frame_equal(result, expected) + + result = index.to_frame() + expected.index = index + tm.assert_frame_equal(result, expected) + + # See GH-22580 + result = index.to_frame(index=False, name=["first", "second"]) + expected = DataFrame( + { + "first": np.repeat(np.arange(5, dtype="int64"), 3), + "second": np.tile(pd.date_range("20130101", periods=3), 5), + } + ) + tm.assert_frame_equal(result, expected) + + result = index.to_frame(name=["first", "second"]) + expected.index = index + tm.assert_frame_equal(result, expected) + + +def test_to_frame_dtype_fidelity(): + # GH 22420 + mi = MultiIndex.from_arrays( + [ + pd.date_range("19910905", periods=6, tz="US/Eastern"), + [1, 1, 1, 2, 2, 2], + pd.Categorical(["a", "a", "b", "b", "c", "c"], ordered=True), + ["x", "x", "y", "z", "x", "y"], + ], + names=["dates", "a", "b", "c"], + ) + original_dtypes = {name: mi.levels[i].dtype for i, name in enumerate(mi.names)} + + expected_df = DataFrame( + { + "dates": pd.date_range("19910905", periods=6, tz="US/Eastern"), + "a": [1, 1, 1, 2, 2, 2], + "b": pd.Categorical(["a", "a", "b", "b", "c", "c"], ordered=True), + "c": ["x", "x", "y", "z", "x", "y"], + } + ) + df = mi.to_frame(index=False) + df_dtypes = df.dtypes.to_dict() + + tm.assert_frame_equal(df, expected_df) + assert original_dtypes == df_dtypes + + +def test_to_frame_resulting_column_order(): + # GH 22420 + expected = ["z", 0, "a"] + mi = MultiIndex.from_arrays( + [["a", "b", "c"], ["x", "y", "z"], ["q", "w", "e"]], names=expected + ) + result = mi.to_frame().columns.tolist() + assert result == expected + + +def test_to_frame_duplicate_labels(): + # GH 45245 + data = [(1, 2), (3, 4)] + names = ["a", "a"] + index = MultiIndex.from_tuples(data, names=names) + with pytest.raises(ValueError, match="Cannot create duplicate column labels"): + index.to_frame() + + result = index.to_frame(allow_duplicates=True) + expected = DataFrame(data, index=index, columns=names) + tm.assert_frame_equal(result, expected) + + names = [None, 0] + index = MultiIndex.from_tuples(data, names=names) + with pytest.raises(ValueError, match="Cannot create duplicate column labels"): + index.to_frame() + + result = index.to_frame(allow_duplicates=True) + expected = DataFrame(data, index=index, columns=[0, 0]) + tm.assert_frame_equal(result, expected) + + +def test_to_flat_index(idx): + expected = pd.Index( + ( + ("foo", "one"), + ("foo", "two"), + ("bar", "one"), + ("baz", "two"), + ("qux", "one"), + ("qux", "two"), + ), + tupleize_cols=False, + ) + result = idx.to_flat_index() + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_copy.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_copy.py new file mode 100644 index 0000000000000000000000000000000000000000..2e09a580f9528bc8197d55c6a7533098e0129fa2 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_copy.py @@ -0,0 +1,96 @@ +from copy import ( + copy, + deepcopy, +) + +import pytest + +from pandas import MultiIndex +import pandas._testing as tm + + +def assert_multiindex_copied(copy, original): + # Levels should be (at least, shallow copied) + tm.assert_copy(copy.levels, original.levels) + tm.assert_almost_equal(copy.codes, original.codes) + + # Labels doesn't matter which way copied + tm.assert_almost_equal(copy.codes, original.codes) + assert copy.codes is not original.codes + + # Names doesn't matter which way copied + assert copy.names == original.names + assert copy.names is not original.names + + # Sort order should be copied + assert copy.sortorder == original.sortorder + + +def test_copy(idx): + i_copy = idx.copy() + + assert_multiindex_copied(i_copy, idx) + + +def test_shallow_copy(idx): + i_copy = idx._view() + + assert_multiindex_copied(i_copy, idx) + + +def test_view(idx): + i_view = idx.view() + assert_multiindex_copied(i_view, idx) + + +@pytest.mark.parametrize("func", [copy, deepcopy]) +def test_copy_and_deepcopy(func): + idx = MultiIndex( + levels=[["foo", "bar"], ["fizz", "buzz"]], + codes=[[0, 0, 0, 1], [0, 0, 1, 1]], + names=["first", "second"], + ) + idx_copy = func(idx) + assert idx_copy is not idx + assert idx_copy.equals(idx) + + +@pytest.mark.parametrize("deep", [True, False]) +def test_copy_method(deep): + idx = MultiIndex( + levels=[["foo", "bar"], ["fizz", "buzz"]], + codes=[[0, 0, 0, 1], [0, 0, 1, 1]], + names=["first", "second"], + ) + idx_copy = idx.copy(deep=deep) + assert idx_copy.equals(idx) + + +@pytest.mark.parametrize("deep", [True, False]) +@pytest.mark.parametrize( + "kwarg, value", + [ + ("names", ["third", "fourth"]), + ], +) +def test_copy_method_kwargs(deep, kwarg, value): + # gh-12309: Check that the "name" argument as well other kwargs are honored + idx = MultiIndex( + levels=[["foo", "bar"], ["fizz", "buzz"]], + codes=[[0, 0, 0, 1], [0, 0, 1, 1]], + names=["first", "second"], + ) + idx_copy = idx.copy(**{kwarg: value, "deep": deep}) + assert getattr(idx_copy, kwarg) == value + + +def test_copy_deep_false_retains_id(): + # GH#47878 + idx = MultiIndex( + levels=[["foo", "bar"], ["fizz", "buzz"]], + codes=[[0, 0, 0, 1], [0, 0, 1, 1]], + names=["first", "second"], + ) + + res = idx.copy(deep=False) + assert res._id is idx._id diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_drop.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_drop.py new file mode 100644 index 0000000000000000000000000000000000000000..99c8ebb1e57b22059d5a545a79de7b8348d73b14 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_drop.py @@ -0,0 +1,190 @@ +import numpy as np +import pytest + +from pandas.errors import PerformanceWarning + +import pandas as pd +from pandas import ( + Index, + MultiIndex, +) +import pandas._testing as tm + + +def test_drop(idx): + dropped = idx.drop([("foo", "two"), ("qux", "one")]) + + index = MultiIndex.from_tuples([("foo", "two"), ("qux", "one")]) + dropped2 = idx.drop(index) + + expected = idx[[0, 2, 3, 5]] + tm.assert_index_equal(dropped, expected) + tm.assert_index_equal(dropped2, expected) + + dropped = idx.drop(["bar"]) + expected = idx[[0, 1, 3, 4, 5]] + tm.assert_index_equal(dropped, expected) + + dropped = idx.drop("foo") + expected = idx[[2, 3, 4, 5]] + tm.assert_index_equal(dropped, expected) + + index = MultiIndex.from_tuples([("bar", "two")]) + with pytest.raises(KeyError, match=r"^\('bar', 'two'\)$"): + idx.drop([("bar", "two")]) + with pytest.raises(KeyError, match=r"^\('bar', 'two'\)$"): + idx.drop(index) + with pytest.raises(KeyError, match=r"^'two'$"): + idx.drop(["foo", "two"]) + + # partially correct argument + mixed_index = MultiIndex.from_tuples([("qux", "one"), ("bar", "two")]) + with pytest.raises(KeyError, match=r"^\('bar', 'two'\)$"): + idx.drop(mixed_index) + + # error='ignore' + dropped = idx.drop(index, errors="ignore") + expected = idx[[0, 1, 2, 3, 4, 5]] + tm.assert_index_equal(dropped, expected) + + dropped = idx.drop(mixed_index, errors="ignore") + expected = idx[[0, 1, 2, 3, 5]] + tm.assert_index_equal(dropped, expected) + + dropped = idx.drop(["foo", "two"], errors="ignore") + expected = idx[[2, 3, 4, 5]] + tm.assert_index_equal(dropped, expected) + + # mixed partial / full drop + dropped = idx.drop(["foo", ("qux", "one")]) + expected = idx[[2, 3, 5]] + tm.assert_index_equal(dropped, expected) + + # mixed partial / full drop / error='ignore' + mixed_index = ["foo", ("qux", "one"), "two"] + with pytest.raises(KeyError, match=r"^'two'$"): + idx.drop(mixed_index) + dropped = idx.drop(mixed_index, errors="ignore") + expected = idx[[2, 3, 5]] + tm.assert_index_equal(dropped, expected) + + +def test_droplevel_with_names(idx): + index = idx[idx.get_loc("foo")] + dropped = index.droplevel(0) + assert dropped.name == "second" + + index = MultiIndex( + levels=[Index(range(4)), Index(range(4)), Index(range(4))], + codes=[ + np.array([0, 0, 1, 2, 2, 2, 3, 3]), + np.array([0, 1, 0, 0, 0, 1, 0, 1]), + np.array([1, 0, 1, 1, 0, 0, 1, 0]), + ], + names=["one", "two", "three"], + ) + dropped = index.droplevel(0) + assert dropped.names == ("two", "three") + + dropped = index.droplevel("two") + expected = index.droplevel(1) + assert dropped.equals(expected) + + +def test_droplevel_list(): + index = MultiIndex( + levels=[Index(range(4)), Index(range(4)), Index(range(4))], + codes=[ + np.array([0, 0, 1, 2, 2, 2, 3, 3]), + np.array([0, 1, 0, 0, 0, 1, 0, 1]), + np.array([1, 0, 1, 1, 0, 0, 1, 0]), + ], + names=["one", "two", "three"], + ) + + dropped = index[:2].droplevel(["three", "one"]) + expected = index[:2].droplevel(2).droplevel(0) + assert dropped.equals(expected) + + dropped = index[:2].droplevel([]) + expected = index[:2] + assert dropped.equals(expected) + + msg = ( + "Cannot remove 3 levels from an index with 3 levels: " + "at least one level must be left" + ) + with pytest.raises(ValueError, match=msg): + index[:2].droplevel(["one", "two", "three"]) + + with pytest.raises(KeyError, match="'Level four not found'"): + index[:2].droplevel(["one", "four"]) + + +def test_drop_not_lexsorted(): + # GH 12078 + + # define the lexsorted version of the multi-index + tuples = [("a", ""), ("b1", "c1"), ("b2", "c2")] + lexsorted_mi = MultiIndex.from_tuples(tuples, names=["b", "c"]) + assert lexsorted_mi._is_lexsorted() + + # and the not-lexsorted version + df = pd.DataFrame( + columns=["a", "b", "c", "d"], data=[[1, "b1", "c1", 3], [1, "b2", "c2", 4]] + ) + df = df.pivot_table(index="a", columns=["b", "c"], values="d") + df = df.reset_index() + not_lexsorted_mi = df.columns + assert not not_lexsorted_mi._is_lexsorted() + + # compare the results + tm.assert_index_equal(lexsorted_mi, not_lexsorted_mi) + with tm.assert_produces_warning(PerformanceWarning): + tm.assert_index_equal(lexsorted_mi.drop("a"), not_lexsorted_mi.drop("a")) + + +def test_drop_with_nan_in_index(nulls_fixture): + # GH#18853 + mi = MultiIndex.from_tuples([("blah", nulls_fixture)], names=["name", "date"]) + msg = r"labels \[Timestamp\('2001-01-01 00:00:00'\)\] not found in level" + with pytest.raises(KeyError, match=msg): + mi.drop(pd.Timestamp("2001"), level="date") + + +@pytest.mark.filterwarnings("ignore::pandas.errors.PerformanceWarning") +def test_drop_with_non_monotonic_duplicates(): + # GH#33494 + mi = MultiIndex.from_tuples([(1, 2), (2, 3), (1, 2)]) + result = mi.drop((1, 2)) + expected = MultiIndex.from_tuples([(2, 3)]) + tm.assert_index_equal(result, expected) + + +def test_single_level_drop_partially_missing_elements(): + # GH 37820 + + mi = MultiIndex.from_tuples([(1, 2), (2, 2), (3, 2)]) + msg = r"labels \[4\] not found in level" + with pytest.raises(KeyError, match=msg): + mi.drop(4, level=0) + with pytest.raises(KeyError, match=msg): + mi.drop([1, 4], level=0) + msg = r"labels \[nan\] not found in level" + with pytest.raises(KeyError, match=msg): + mi.drop([np.nan], level=0) + with pytest.raises(KeyError, match=msg): + mi.drop([np.nan, 1, 2, 3], level=0) + + mi = MultiIndex.from_tuples([(np.nan, 1), (1, 2)]) + msg = r"labels \['a'\] not found in level" + with pytest.raises(KeyError, match=msg): + mi.drop([np.nan, 1, "a"], level=0) + + +def test_droplevel_multiindex_one_level(): + # GH#37208 + index = MultiIndex.from_tuples([(2,)], names=("b",)) + result = index.droplevel([]) + expected = Index([2], name="b") + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_duplicates.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_duplicates.py new file mode 100644 index 0000000000000000000000000000000000000000..6c6d9022b1af31e905b5ec739753af77a52f438b --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_duplicates.py @@ -0,0 +1,363 @@ +from itertools import product + +import numpy as np +import pytest + +from pandas._libs import ( + hashtable, + index as libindex, +) + +from pandas import ( + NA, + DatetimeIndex, + Index, + MultiIndex, + Series, +) +import pandas._testing as tm + + +@pytest.fixture +def idx_dup(): + # compare tests/indexes/multi/conftest.py + major_axis = Index(["foo", "bar", "baz", "qux"]) + minor_axis = Index(["one", "two"]) + + major_codes = np.array([0, 0, 1, 0, 1, 1]) + minor_codes = np.array([0, 1, 0, 1, 0, 1]) + index_names = ["first", "second"] + mi = MultiIndex( + levels=[major_axis, minor_axis], + codes=[major_codes, minor_codes], + names=index_names, + verify_integrity=False, + ) + return mi + + +@pytest.mark.parametrize("names", [None, ["first", "second"]]) +def test_unique(names): + mi = MultiIndex.from_arrays([[1, 2, 1, 2], [1, 1, 1, 2]], names=names) + + res = mi.unique() + exp = MultiIndex.from_arrays([[1, 2, 2], [1, 1, 2]], names=mi.names) + tm.assert_index_equal(res, exp) + + mi = MultiIndex.from_arrays([list("aaaa"), list("abab")], names=names) + res = mi.unique() + exp = MultiIndex.from_arrays([list("aa"), list("ab")], names=mi.names) + tm.assert_index_equal(res, exp) + + mi = MultiIndex.from_arrays([list("aaaa"), list("aaaa")], names=names) + res = mi.unique() + exp = MultiIndex.from_arrays([["a"], ["a"]], names=mi.names) + tm.assert_index_equal(res, exp) + + # GH #20568 - empty MI + mi = MultiIndex.from_arrays([[], []], names=names) + res = mi.unique() + tm.assert_index_equal(mi, res) + + +def test_unique_datetimelike(): + idx1 = DatetimeIndex( + ["2015-01-01", "2015-01-01", "2015-01-01", "2015-01-01", "NaT", "NaT"] + ) + idx2 = DatetimeIndex( + ["2015-01-01", "2015-01-01", "2015-01-02", "2015-01-02", "NaT", "2015-01-01"], + tz="Asia/Tokyo", + ) + result = MultiIndex.from_arrays([idx1, idx2]).unique() + + eidx1 = DatetimeIndex(["2015-01-01", "2015-01-01", "NaT", "NaT"]) + eidx2 = DatetimeIndex( + ["2015-01-01", "2015-01-02", "NaT", "2015-01-01"], tz="Asia/Tokyo" + ) + exp = MultiIndex.from_arrays([eidx1, eidx2]) + tm.assert_index_equal(result, exp) + + +@pytest.mark.parametrize("level", [0, "first", 1, "second"]) +def test_unique_level(idx, level): + # GH #17896 - with level= argument + result = idx.unique(level=level) + expected = idx.get_level_values(level).unique() + tm.assert_index_equal(result, expected) + + # With already unique level + mi = MultiIndex.from_arrays([[1, 3, 2, 4], [1, 3, 2, 5]], names=["first", "second"]) + result = mi.unique(level=level) + expected = mi.get_level_values(level) + tm.assert_index_equal(result, expected) + + # With empty MI + mi = MultiIndex.from_arrays([[], []], names=["first", "second"]) + result = mi.unique(level=level) + expected = mi.get_level_values(level) + tm.assert_index_equal(result, expected) + + +def test_duplicate_multiindex_codes(): + # GH 17464 + # Make sure that a MultiIndex with duplicate levels throws a ValueError + msg = r"Level values must be unique: \[[A', ]+\] on level 0" + with pytest.raises(ValueError, match=msg): + mi = MultiIndex([["A"] * 10, range(10)], [[0] * 10, range(10)]) + + # And that using set_levels with duplicate levels fails + mi = MultiIndex.from_arrays([["A", "A", "B", "B", "B"], [1, 2, 1, 2, 3]]) + msg = r"Level values must be unique: \[[AB', ]+\] on level 0" + with pytest.raises(ValueError, match=msg): + mi.set_levels([["A", "B", "A", "A", "B"], [2, 1, 3, -2, 5]]) + + +@pytest.mark.parametrize("names", [["a", "b", "a"], [1, 1, 2], [1, "a", 1]]) +def test_duplicate_level_names(names): + # GH18872, GH19029 + mi = MultiIndex.from_product([[0, 1]] * 3, names=names) + assert mi.names == names + + # With .rename() + mi = MultiIndex.from_product([[0, 1]] * 3) + mi = mi.rename(names) + assert mi.names == names + + # With .rename(., level=) + mi.rename(names[1], level=1, inplace=True) + mi = mi.rename([names[0], names[2]], level=[0, 2]) + assert mi.names == names + + +def test_duplicate_meta_data(): + # GH 10115 + mi = MultiIndex( + levels=[[0, 1], [0, 1, 2]], codes=[[0, 0, 0, 0, 1, 1, 1], [0, 1, 2, 0, 0, 1, 2]] + ) + + for idx in [ + mi, + mi.set_names([None, None]), + mi.set_names([None, "Num"]), + mi.set_names(["Upper", "Num"]), + ]: + assert idx.has_duplicates + assert idx.drop_duplicates().names == idx.names + + +def test_has_duplicates(idx, idx_dup): + # see fixtures + assert idx.is_unique is True + assert idx.has_duplicates is False + assert idx_dup.is_unique is False + assert idx_dup.has_duplicates is True + + mi = MultiIndex( + levels=[[0, 1], [0, 1, 2]], codes=[[0, 0, 0, 0, 1, 1, 1], [0, 1, 2, 0, 0, 1, 2]] + ) + assert mi.is_unique is False + assert mi.has_duplicates is True + + # single instance of NaN + mi_nan = MultiIndex( + levels=[["a", "b"], [0, 1]], codes=[[-1, 0, 0, 1, 1], [-1, 0, 1, 0, 1]] + ) + assert mi_nan.is_unique is True + assert mi_nan.has_duplicates is False + + # multiple instances of NaN + mi_nan_dup = MultiIndex( + levels=[["a", "b"], [0, 1]], codes=[[-1, -1, 0, 0, 1, 1], [-1, -1, 0, 1, 0, 1]] + ) + assert mi_nan_dup.is_unique is False + assert mi_nan_dup.has_duplicates is True + + +def test_has_duplicates_from_tuples(): + # GH 9075 + t = [ + ("x", "out", "z", 5, "y", "in", "z", 169), + ("x", "out", "z", 7, "y", "in", "z", 119), + ("x", "out", "z", 9, "y", "in", "z", 135), + ("x", "out", "z", 13, "y", "in", "z", 145), + ("x", "out", "z", 14, "y", "in", "z", 158), + ("x", "out", "z", 16, "y", "in", "z", 122), + ("x", "out", "z", 17, "y", "in", "z", 160), + ("x", "out", "z", 18, "y", "in", "z", 180), + ("x", "out", "z", 20, "y", "in", "z", 143), + ("x", "out", "z", 21, "y", "in", "z", 128), + ("x", "out", "z", 22, "y", "in", "z", 129), + ("x", "out", "z", 25, "y", "in", "z", 111), + ("x", "out", "z", 28, "y", "in", "z", 114), + ("x", "out", "z", 29, "y", "in", "z", 121), + ("x", "out", "z", 31, "y", "in", "z", 126), + ("x", "out", "z", 32, "y", "in", "z", 155), + ("x", "out", "z", 33, "y", "in", "z", 123), + ("x", "out", "z", 12, "y", "in", "z", 144), + ] + + mi = MultiIndex.from_tuples(t) + assert not mi.has_duplicates + + +@pytest.mark.parametrize("nlevels", [4, 8]) +@pytest.mark.parametrize("with_nulls", [True, False]) +def test_has_duplicates_overflow(nlevels, with_nulls): + # handle int64 overflow if possible + # no overflow with 4 + # overflow possible with 8 + codes = np.tile(np.arange(500), 2) + level = np.arange(500) + + if with_nulls: # inject some null values + codes[500] = -1 # common nan value + codes = [codes.copy() for i in range(nlevels)] + for i in range(nlevels): + codes[i][500 + i - nlevels // 2] = -1 + + codes += [np.array([-1, 1]).repeat(500)] + else: + codes = [codes] * nlevels + [np.arange(2).repeat(500)] + + levels = [level] * nlevels + [[0, 1]] + + # no dups + mi = MultiIndex(levels=levels, codes=codes) + assert not mi.has_duplicates + + # with a dup + if with_nulls: + + def f(a): + return np.insert(a, 1000, a[0]) + + codes = list(map(f, codes)) + mi = MultiIndex(levels=levels, codes=codes) + else: + values = mi.values.tolist() + mi = MultiIndex.from_tuples(values + [values[0]]) + + assert mi.has_duplicates + + +@pytest.mark.parametrize( + "keep, expected", + [ + ("first", np.array([False, False, False, True, True, False])), + ("last", np.array([False, True, True, False, False, False])), + (False, np.array([False, True, True, True, True, False])), + ], +) +def test_duplicated(idx_dup, keep, expected): + result = idx_dup.duplicated(keep=keep) + tm.assert_numpy_array_equal(result, expected) + + +@pytest.mark.arm_slow +def test_duplicated_hashtable_impl(keep, monkeypatch): + # GH 9125 + n, k = 6, 10 + levels = [np.arange(n), [str(i) for i in range(n)], 1000 + np.arange(n)] + codes = [np.random.default_rng(2).choice(n, k * n) for _ in levels] + with monkeypatch.context() as m: + m.setattr(libindex, "_SIZE_CUTOFF", 50) + mi = MultiIndex(levels=levels, codes=codes) + + result = mi.duplicated(keep=keep) + expected = hashtable.duplicated(mi.values, keep=keep) + tm.assert_numpy_array_equal(result, expected) + + +@pytest.mark.parametrize("val", [101, 102]) +def test_duplicated_with_nan(val): + # GH5873 + mi = MultiIndex.from_arrays([[101, val], [3.5, np.nan]]) + assert not mi.has_duplicates + + tm.assert_numpy_array_equal(mi.duplicated(), np.zeros(2, dtype="bool")) + + +@pytest.mark.parametrize("n", range(1, 6)) +@pytest.mark.parametrize("m", range(1, 5)) +def test_duplicated_with_nan_multi_shape(n, m): + # GH5873 + # all possible unique combinations, including nan + codes = product(range(-1, n), range(-1, m)) + mi = MultiIndex( + levels=[list("abcde")[:n], list("WXYZ")[:m]], + codes=np.random.default_rng(2).permutation(list(codes)).T, + ) + assert len(mi) == (n + 1) * (m + 1) + assert not mi.has_duplicates + + tm.assert_numpy_array_equal(mi.duplicated(), np.zeros(len(mi), dtype="bool")) + + +def test_duplicated_drop_duplicates(): + # GH#4060 + idx = MultiIndex.from_arrays(([1, 2, 3, 1, 2, 3], [1, 1, 1, 1, 2, 2])) + + expected = np.array([False, False, False, True, False, False], dtype=bool) + duplicated = idx.duplicated() + tm.assert_numpy_array_equal(duplicated, expected) + assert duplicated.dtype == bool + expected = MultiIndex.from_arrays(([1, 2, 3, 2, 3], [1, 1, 1, 2, 2])) + tm.assert_index_equal(idx.drop_duplicates(), expected) + + expected = np.array([True, False, False, False, False, False]) + duplicated = idx.duplicated(keep="last") + tm.assert_numpy_array_equal(duplicated, expected) + assert duplicated.dtype == bool + expected = MultiIndex.from_arrays(([2, 3, 1, 2, 3], [1, 1, 1, 2, 2])) + tm.assert_index_equal(idx.drop_duplicates(keep="last"), expected) + + expected = np.array([True, False, False, True, False, False]) + duplicated = idx.duplicated(keep=False) + tm.assert_numpy_array_equal(duplicated, expected) + assert duplicated.dtype == bool + expected = MultiIndex.from_arrays(([2, 3, 2, 3], [1, 1, 2, 2])) + tm.assert_index_equal(idx.drop_duplicates(keep=False), expected) + + +@pytest.mark.parametrize( + "dtype", + [ + np.complex64, + np.complex128, + ], +) +def test_duplicated_series_complex_numbers(dtype): + # GH 17927 + expected = Series( + [False, False, False, True, False, False, False, True, False, True], + dtype=bool, + ) + result = Series( + [ + np.nan + np.nan * 1j, + 0, + 1j, + 1j, + 1, + 1 + 1j, + 1 + 2j, + 1 + 1j, + np.nan, + np.nan + np.nan * 1j, + ], + dtype=dtype, + ).duplicated() + tm.assert_series_equal(result, expected) + + +def test_midx_unique_ea_dtype(): + # GH#48335 + vals_a = Series([1, 2, NA, NA], dtype="Int64") + vals_b = np.array([1, 2, 3, 3]) + midx = MultiIndex.from_arrays([vals_a, vals_b], names=["a", "b"]) + result = midx.unique() + + exp_vals_a = Series([1, 2, NA], dtype="Int64") + exp_vals_b = np.array([1, 2, 3]) + expected = MultiIndex.from_arrays([exp_vals_a, exp_vals_b], names=["a", "b"]) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_equivalence.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_equivalence.py new file mode 100644 index 0000000000000000000000000000000000000000..9babbd5b8d56d64d704978758efb81f8d730274f --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_equivalence.py @@ -0,0 +1,284 @@ +import numpy as np +import pytest + +from pandas.core.dtypes.common import is_any_real_numeric_dtype + +import pandas as pd +from pandas import ( + Index, + MultiIndex, + Series, +) +import pandas._testing as tm + + +def test_equals(idx): + assert idx.equals(idx) + assert idx.equals(idx.copy()) + assert idx.equals(idx.astype(object)) + assert idx.equals(idx.to_flat_index()) + assert idx.equals(idx.to_flat_index().astype("category")) + + assert not idx.equals(list(idx)) + assert not idx.equals(np.array(idx)) + + same_values = Index(idx, dtype=object) + assert idx.equals(same_values) + assert same_values.equals(idx) + + if idx.nlevels == 1: + # do not test MultiIndex + assert not idx.equals(Series(idx)) + + +def test_equals_op(idx): + # GH9947, GH10637 + index_a = idx + + n = len(index_a) + index_b = index_a[0:-1] + index_c = index_a[0:-1].append(index_a[-2:-1]) + index_d = index_a[0:1] + with pytest.raises(ValueError, match="Lengths must match"): + index_a == index_b + expected1 = np.array([True] * n) + expected2 = np.array([True] * (n - 1) + [False]) + tm.assert_numpy_array_equal(index_a == index_a, expected1) + tm.assert_numpy_array_equal(index_a == index_c, expected2) + + # test comparisons with numpy arrays + array_a = np.array(index_a) + array_b = np.array(index_a[0:-1]) + array_c = np.array(index_a[0:-1].append(index_a[-2:-1])) + array_d = np.array(index_a[0:1]) + with pytest.raises(ValueError, match="Lengths must match"): + index_a == array_b + tm.assert_numpy_array_equal(index_a == array_a, expected1) + tm.assert_numpy_array_equal(index_a == array_c, expected2) + + # test comparisons with Series + series_a = Series(array_a) + series_b = Series(array_b) + series_c = Series(array_c) + series_d = Series(array_d) + with pytest.raises(ValueError, match="Lengths must match"): + index_a == series_b + + tm.assert_numpy_array_equal(index_a == series_a, expected1) + tm.assert_numpy_array_equal(index_a == series_c, expected2) + + # cases where length is 1 for one of them + with pytest.raises(ValueError, match="Lengths must match"): + index_a == index_d + with pytest.raises(ValueError, match="Lengths must match"): + index_a == series_d + with pytest.raises(ValueError, match="Lengths must match"): + index_a == array_d + msg = "Can only compare identically-labeled Series objects" + with pytest.raises(ValueError, match=msg): + series_a == series_d + with pytest.raises(ValueError, match="Lengths must match"): + series_a == array_d + + # comparing with a scalar should broadcast; note that we are excluding + # MultiIndex because in this case each item in the index is a tuple of + # length 2, and therefore is considered an array of length 2 in the + # comparison instead of a scalar + if not isinstance(index_a, MultiIndex): + expected3 = np.array([False] * (len(index_a) - 2) + [True, False]) + # assuming the 2nd to last item is unique in the data + item = index_a[-2] + tm.assert_numpy_array_equal(index_a == item, expected3) + tm.assert_series_equal(series_a == item, Series(expected3)) + + +def test_compare_tuple(): + # GH#21517 + mi = MultiIndex.from_product([[1, 2]] * 2) + + all_false = np.array([False, False, False, False]) + + result = mi == mi[0] + expected = np.array([True, False, False, False]) + tm.assert_numpy_array_equal(result, expected) + + result = mi != mi[0] + tm.assert_numpy_array_equal(result, ~expected) + + result = mi < mi[0] + tm.assert_numpy_array_equal(result, all_false) + + result = mi <= mi[0] + tm.assert_numpy_array_equal(result, expected) + + result = mi > mi[0] + tm.assert_numpy_array_equal(result, ~expected) + + result = mi >= mi[0] + tm.assert_numpy_array_equal(result, ~all_false) + + +def test_compare_tuple_strs(): + # GH#34180 + + mi = MultiIndex.from_tuples([("a", "b"), ("b", "c"), ("c", "a")]) + + result = mi == ("c", "a") + expected = np.array([False, False, True]) + tm.assert_numpy_array_equal(result, expected) + + result = mi == ("c",) + expected = np.array([False, False, False]) + tm.assert_numpy_array_equal(result, expected) + + +def test_equals_multi(idx): + assert idx.equals(idx) + assert not idx.equals(idx.values) + assert idx.equals(Index(idx.values)) + + assert idx.equal_levels(idx) + assert not idx.equals(idx[:-1]) + assert not idx.equals(idx[-1]) + + # different number of levels + index = MultiIndex( + levels=[Index(list(range(4))), Index(list(range(4))), Index(list(range(4)))], + codes=[ + np.array([0, 0, 1, 2, 2, 2, 3, 3]), + np.array([0, 1, 0, 0, 0, 1, 0, 1]), + np.array([1, 0, 1, 1, 0, 0, 1, 0]), + ], + ) + + index2 = MultiIndex(levels=index.levels[:-1], codes=index.codes[:-1]) + assert not index.equals(index2) + assert not index.equal_levels(index2) + + # levels are different + major_axis = Index(list(range(4))) + minor_axis = Index(list(range(2))) + + major_codes = np.array([0, 0, 1, 2, 2, 3]) + minor_codes = np.array([0, 1, 0, 0, 1, 0]) + + index = MultiIndex( + levels=[major_axis, minor_axis], codes=[major_codes, minor_codes] + ) + assert not idx.equals(index) + assert not idx.equal_levels(index) + + # some of the labels are different + major_axis = Index(["foo", "bar", "baz", "qux"]) + minor_axis = Index(["one", "two"]) + + major_codes = np.array([0, 0, 2, 2, 3, 3]) + minor_codes = np.array([0, 1, 0, 1, 0, 1]) + + index = MultiIndex( + levels=[major_axis, minor_axis], codes=[major_codes, minor_codes] + ) + assert not idx.equals(index) + + +def test_identical(idx): + mi = idx.copy() + mi2 = idx.copy() + assert mi.identical(mi2) + + mi = mi.set_names(["new1", "new2"]) + assert mi.equals(mi2) + assert not mi.identical(mi2) + + mi2 = mi2.set_names(["new1", "new2"]) + assert mi.identical(mi2) + + mi4 = Index(mi.tolist(), tupleize_cols=False) + assert not mi.identical(mi4) + assert mi.equals(mi4) + + +def test_equals_operator(idx): + # GH9785 + assert (idx == idx).all() + + +def test_equals_missing_values(): + # make sure take is not using -1 + i = MultiIndex.from_tuples([(0, pd.NaT), (0, pd.Timestamp("20130101"))]) + result = i[0:1].equals(i[0]) + assert not result + result = i[1:2].equals(i[1]) + assert not result + + +def test_equals_missing_values_differently_sorted(): + # GH#38439 + mi1 = MultiIndex.from_tuples([(81.0, np.nan), (np.nan, np.nan)]) + mi2 = MultiIndex.from_tuples([(np.nan, np.nan), (81.0, np.nan)]) + assert not mi1.equals(mi2) + + mi2 = MultiIndex.from_tuples([(81.0, np.nan), (np.nan, np.nan)]) + assert mi1.equals(mi2) + + +def test_is_(): + mi = MultiIndex.from_tuples(zip(range(10), range(10))) + assert mi.is_(mi) + assert mi.is_(mi.view()) + assert mi.is_(mi.view().view().view().view()) + mi2 = mi.view() + # names are metadata, they don't change id + mi2.names = ["A", "B"] + assert mi2.is_(mi) + assert mi.is_(mi2) + + assert not mi.is_(mi.set_names(["C", "D"])) + # levels are inherent properties, they change identity + mi3 = mi2.set_levels([list(range(10)), list(range(10))]) + assert not mi3.is_(mi2) + # shouldn't change + assert mi2.is_(mi) + mi4 = mi3.view() + + # GH 17464 - Remove duplicate MultiIndex levels + mi4 = mi4.set_levels([list(range(10)), list(range(10))]) + assert not mi4.is_(mi3) + mi5 = mi.view() + mi5 = mi5.set_levels(mi5.levels) + assert not mi5.is_(mi) + + +def test_is_all_dates(idx): + assert not idx._is_all_dates + + +def test_is_numeric(idx): + # MultiIndex is never numeric + assert not is_any_real_numeric_dtype(idx) + + +def test_multiindex_compare(): + # GH 21149 + # Ensure comparison operations for MultiIndex with nlevels == 1 + # behave consistently with those for MultiIndex with nlevels > 1 + + midx = MultiIndex.from_product([[0, 1]]) + + # Equality self-test: MultiIndex object vs self + expected = Series([True, True]) + result = Series(midx == midx) + tm.assert_series_equal(result, expected) + + # Greater than comparison: MultiIndex object vs self + expected = Series([False, False]) + result = Series(midx > midx) + tm.assert_series_equal(result, expected) + + +def test_equals_ea_int_regular_int(): + # GH#46026 + mi1 = MultiIndex.from_arrays([Index([1, 2], dtype="Int64"), [3, 4]]) + mi2 = MultiIndex.from_arrays([[1, 2], [3, 4]]) + assert not mi1.equals(mi2) + assert not mi2.equals(mi1) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_formats.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_formats.py new file mode 100644 index 0000000000000000000000000000000000000000..52ff3109128f24f43d9a12527d08770b463459a5 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_formats.py @@ -0,0 +1,249 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + Index, + MultiIndex, +) +import pandas._testing as tm + + +def test_format(idx): + msg = "MultiIndex.format is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + idx.format() + idx[:0].format() + + +def test_format_integer_names(): + index = MultiIndex( + levels=[[0, 1], [0, 1]], codes=[[0, 0, 1, 1], [0, 1, 0, 1]], names=[0, 1] + ) + msg = "MultiIndex.format is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + index.format(names=True) + + +def test_format_sparse_config(idx): + # GH1538 + msg = "MultiIndex.format is deprecated" + with pd.option_context("display.multi_sparse", False): + with tm.assert_produces_warning(FutureWarning, match=msg): + result = idx.format() + assert result[1] == "foo two" + + +def test_format_sparse_display(): + index = MultiIndex( + levels=[[0, 1], [0, 1], [0, 1], [0]], + codes=[ + [0, 0, 0, 1, 1, 1], + [0, 0, 1, 0, 0, 1], + [0, 1, 0, 0, 1, 0], + [0, 0, 0, 0, 0, 0], + ], + ) + msg = "MultiIndex.format is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = index.format() + assert result[3] == "1 0 0 0" + + +def test_repr_with_unicode_data(): + with pd.option_context("display.encoding", "UTF-8"): + d = {"a": ["\u05d0", 2, 3], "b": [4, 5, 6], "c": [7, 8, 9]} + index = pd.DataFrame(d).set_index(["a", "b"]).index + assert "\\" not in repr(index) # we don't want unicode-escaped + + +def test_repr_roundtrip_raises(): + mi = MultiIndex.from_product([list("ab"), range(3)], names=["first", "second"]) + msg = "Must pass both levels and codes" + with pytest.raises(TypeError, match=msg): + eval(repr(mi)) + + +def test_unicode_string_with_unicode(): + d = {"a": ["\u05d0", 2, 3], "b": [4, 5, 6], "c": [7, 8, 9]} + idx = pd.DataFrame(d).set_index(["a", "b"]).index + str(idx) + + +def test_repr_max_seq_item_setting(idx): + # GH10182 + idx = idx.repeat(50) + with pd.option_context("display.max_seq_items", None): + repr(idx) + assert "..." not in str(idx) + + +class TestRepr: + def test_unicode_repr_issues(self): + levels = [Index(["a/\u03c3", "b/\u03c3", "c/\u03c3"]), Index([0, 1])] + codes = [np.arange(3).repeat(2), np.tile(np.arange(2), 3)] + index = MultiIndex(levels=levels, codes=codes) + + repr(index.levels) + repr(index.get_level_values(1)) + + def test_repr_max_seq_items_equal_to_n(self, idx): + # display.max_seq_items == n + with pd.option_context("display.max_seq_items", 6): + result = idx.__repr__() + expected = """\ +MultiIndex([('foo', 'one'), + ('foo', 'two'), + ('bar', 'one'), + ('baz', 'two'), + ('qux', 'one'), + ('qux', 'two')], + names=['first', 'second'])""" + assert result == expected + + def test_repr(self, idx): + result = idx[:1].__repr__() + expected = """\ +MultiIndex([('foo', 'one')], + names=['first', 'second'])""" + assert result == expected + + result = idx.__repr__() + expected = """\ +MultiIndex([('foo', 'one'), + ('foo', 'two'), + ('bar', 'one'), + ('baz', 'two'), + ('qux', 'one'), + ('qux', 'two')], + names=['first', 'second'])""" + assert result == expected + + with pd.option_context("display.max_seq_items", 5): + result = idx.__repr__() + expected = """\ +MultiIndex([('foo', 'one'), + ('foo', 'two'), + ... + ('qux', 'one'), + ('qux', 'two')], + names=['first', 'second'], length=6)""" + assert result == expected + + # display.max_seq_items == 1 + with pd.option_context("display.max_seq_items", 1): + result = idx.__repr__() + expected = """\ +MultiIndex([... + ('qux', 'two')], + names=['first', ...], length=6)""" + assert result == expected + + def test_rjust(self): + n = 1000 + ci = pd.CategoricalIndex(list("a" * n) + (["abc"] * n)) + dti = pd.date_range("2000-01-01", freq="s", periods=n * 2) + mi = MultiIndex.from_arrays([ci, ci.codes + 9, dti], names=["a", "b", "dti"]) + result = mi[:1].__repr__() + expected = """\ +MultiIndex([('a', 9, '2000-01-01 00:00:00')], + names=['a', 'b', 'dti'])""" + assert result == expected + + result = mi[::500].__repr__() + expected = """\ +MultiIndex([( 'a', 9, '2000-01-01 00:00:00'), + ( 'a', 9, '2000-01-01 00:08:20'), + ('abc', 10, '2000-01-01 00:16:40'), + ('abc', 10, '2000-01-01 00:25:00')], + names=['a', 'b', 'dti'])""" + assert result == expected + + result = mi.__repr__() + expected = """\ +MultiIndex([( 'a', 9, '2000-01-01 00:00:00'), + ( 'a', 9, '2000-01-01 00:00:01'), + ( 'a', 9, '2000-01-01 00:00:02'), + ( 'a', 9, '2000-01-01 00:00:03'), + ( 'a', 9, '2000-01-01 00:00:04'), + ( 'a', 9, '2000-01-01 00:00:05'), + ( 'a', 9, '2000-01-01 00:00:06'), + ( 'a', 9, '2000-01-01 00:00:07'), + ( 'a', 9, '2000-01-01 00:00:08'), + ( 'a', 9, '2000-01-01 00:00:09'), + ... + ('abc', 10, '2000-01-01 00:33:10'), + ('abc', 10, '2000-01-01 00:33:11'), + ('abc', 10, '2000-01-01 00:33:12'), + ('abc', 10, '2000-01-01 00:33:13'), + ('abc', 10, '2000-01-01 00:33:14'), + ('abc', 10, '2000-01-01 00:33:15'), + ('abc', 10, '2000-01-01 00:33:16'), + ('abc', 10, '2000-01-01 00:33:17'), + ('abc', 10, '2000-01-01 00:33:18'), + ('abc', 10, '2000-01-01 00:33:19')], + names=['a', 'b', 'dti'], length=2000)""" + assert result == expected + + def test_tuple_width(self): + n = 1000 + ci = pd.CategoricalIndex(list("a" * n) + (["abc"] * n)) + dti = pd.date_range("2000-01-01", freq="s", periods=n * 2) + levels = [ci, ci.codes + 9, dti, dti, dti] + names = ["a", "b", "dti_1", "dti_2", "dti_3"] + mi = MultiIndex.from_arrays(levels, names=names) + result = mi[:1].__repr__() + expected = """MultiIndex([('a', 9, '2000-01-01 00:00:00', '2000-01-01 00:00:00', ...)], + names=['a', 'b', 'dti_1', 'dti_2', 'dti_3'])""" # noqa: E501 + assert result == expected + + result = mi[:10].__repr__() + expected = """\ +MultiIndex([('a', 9, '2000-01-01 00:00:00', '2000-01-01 00:00:00', ...), + ('a', 9, '2000-01-01 00:00:01', '2000-01-01 00:00:01', ...), + ('a', 9, '2000-01-01 00:00:02', '2000-01-01 00:00:02', ...), + ('a', 9, '2000-01-01 00:00:03', '2000-01-01 00:00:03', ...), + ('a', 9, '2000-01-01 00:00:04', '2000-01-01 00:00:04', ...), + ('a', 9, '2000-01-01 00:00:05', '2000-01-01 00:00:05', ...), + ('a', 9, '2000-01-01 00:00:06', '2000-01-01 00:00:06', ...), + ('a', 9, '2000-01-01 00:00:07', '2000-01-01 00:00:07', ...), + ('a', 9, '2000-01-01 00:00:08', '2000-01-01 00:00:08', ...), + ('a', 9, '2000-01-01 00:00:09', '2000-01-01 00:00:09', ...)], + names=['a', 'b', 'dti_1', 'dti_2', 'dti_3'])""" + assert result == expected + + result = mi.__repr__() + expected = """\ +MultiIndex([( 'a', 9, '2000-01-01 00:00:00', '2000-01-01 00:00:00', ...), + ( 'a', 9, '2000-01-01 00:00:01', '2000-01-01 00:00:01', ...), + ( 'a', 9, '2000-01-01 00:00:02', '2000-01-01 00:00:02', ...), + ( 'a', 9, '2000-01-01 00:00:03', '2000-01-01 00:00:03', ...), + ( 'a', 9, '2000-01-01 00:00:04', '2000-01-01 00:00:04', ...), + ( 'a', 9, '2000-01-01 00:00:05', '2000-01-01 00:00:05', ...), + ( 'a', 9, '2000-01-01 00:00:06', '2000-01-01 00:00:06', ...), + ( 'a', 9, '2000-01-01 00:00:07', '2000-01-01 00:00:07', ...), + ( 'a', 9, '2000-01-01 00:00:08', '2000-01-01 00:00:08', ...), + ( 'a', 9, '2000-01-01 00:00:09', '2000-01-01 00:00:09', ...), + ... + ('abc', 10, '2000-01-01 00:33:10', '2000-01-01 00:33:10', ...), + ('abc', 10, '2000-01-01 00:33:11', '2000-01-01 00:33:11', ...), + ('abc', 10, '2000-01-01 00:33:12', '2000-01-01 00:33:12', ...), + ('abc', 10, '2000-01-01 00:33:13', '2000-01-01 00:33:13', ...), + ('abc', 10, '2000-01-01 00:33:14', '2000-01-01 00:33:14', ...), + ('abc', 10, '2000-01-01 00:33:15', '2000-01-01 00:33:15', ...), + ('abc', 10, '2000-01-01 00:33:16', '2000-01-01 00:33:16', ...), + ('abc', 10, '2000-01-01 00:33:17', '2000-01-01 00:33:17', ...), + ('abc', 10, '2000-01-01 00:33:18', '2000-01-01 00:33:18', ...), + ('abc', 10, '2000-01-01 00:33:19', '2000-01-01 00:33:19', ...)], + names=['a', 'b', 'dti_1', 'dti_2', 'dti_3'], length=2000)""" + assert result == expected + + def test_multiindex_long_element(self): + # Non-regression test towards GH#52960 + data = MultiIndex.from_tuples([("c" * 62,)]) + + expected = ( + "MultiIndex([('cccccccccccccccccccccccccccccccccccccccc" + "cccccccccccccccccccccc',)],\n )" + ) + assert str(data) == expected diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_get_level_values.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_get_level_values.py new file mode 100644 index 0000000000000000000000000000000000000000..28c77e78924cbc35feed4ae838b81f6be38478b5 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_get_level_values.py @@ -0,0 +1,124 @@ +import numpy as np + +import pandas as pd +from pandas import ( + CategoricalIndex, + Index, + MultiIndex, + Timestamp, + date_range, +) +import pandas._testing as tm + + +class TestGetLevelValues: + def test_get_level_values_box_datetime64(self): + dates = date_range("1/1/2000", periods=4) + levels = [dates, [0, 1]] + codes = [[0, 0, 1, 1, 2, 2, 3, 3], [0, 1, 0, 1, 0, 1, 0, 1]] + + index = MultiIndex(levels=levels, codes=codes) + + assert isinstance(index.get_level_values(0)[0], Timestamp) + + +def test_get_level_values(idx): + result = idx.get_level_values(0) + expected = Index(["foo", "foo", "bar", "baz", "qux", "qux"], name="first") + tm.assert_index_equal(result, expected) + assert result.name == "first" + + result = idx.get_level_values("first") + expected = idx.get_level_values(0) + tm.assert_index_equal(result, expected) + + # GH 10460 + index = MultiIndex( + levels=[CategoricalIndex(["A", "B"]), CategoricalIndex([1, 2, 3])], + codes=[np.array([0, 0, 0, 1, 1, 1]), np.array([0, 1, 2, 0, 1, 2])], + ) + + exp = CategoricalIndex(["A", "A", "A", "B", "B", "B"]) + tm.assert_index_equal(index.get_level_values(0), exp) + exp = CategoricalIndex([1, 2, 3, 1, 2, 3]) + tm.assert_index_equal(index.get_level_values(1), exp) + + +def test_get_level_values_all_na(): + # GH#17924 when level entirely consists of nan + arrays = [[np.nan, np.nan, np.nan], ["a", np.nan, 1]] + index = MultiIndex.from_arrays(arrays) + result = index.get_level_values(0) + expected = Index([np.nan, np.nan, np.nan], dtype=np.float64) + tm.assert_index_equal(result, expected) + + result = index.get_level_values(1) + expected = Index(["a", np.nan, 1], dtype=object) + tm.assert_index_equal(result, expected) + + +def test_get_level_values_int_with_na(): + # GH#17924 + arrays = [["a", "b", "b"], [1, np.nan, 2]] + index = MultiIndex.from_arrays(arrays) + result = index.get_level_values(1) + expected = Index([1, np.nan, 2]) + tm.assert_index_equal(result, expected) + + arrays = [["a", "b", "b"], [np.nan, np.nan, 2]] + index = MultiIndex.from_arrays(arrays) + result = index.get_level_values(1) + expected = Index([np.nan, np.nan, 2]) + tm.assert_index_equal(result, expected) + + +def test_get_level_values_na(): + arrays = [[np.nan, np.nan, np.nan], ["a", np.nan, 1]] + index = MultiIndex.from_arrays(arrays) + result = index.get_level_values(0) + expected = Index([np.nan, np.nan, np.nan]) + tm.assert_index_equal(result, expected) + + result = index.get_level_values(1) + expected = Index(["a", np.nan, 1]) + tm.assert_index_equal(result, expected) + + arrays = [["a", "b", "b"], pd.DatetimeIndex([0, 1, pd.NaT])] + index = MultiIndex.from_arrays(arrays) + result = index.get_level_values(1) + expected = pd.DatetimeIndex([0, 1, pd.NaT]) + tm.assert_index_equal(result, expected) + + arrays = [[], []] + index = MultiIndex.from_arrays(arrays) + result = index.get_level_values(0) + expected = Index([], dtype=object) + tm.assert_index_equal(result, expected) + + +def test_get_level_values_when_periods(): + # GH33131. See also discussion in GH32669. + # This test can probably be removed when PeriodIndex._engine is removed. + from pandas import ( + Period, + PeriodIndex, + ) + + idx = MultiIndex.from_arrays( + [PeriodIndex([Period("2019Q1"), Period("2019Q2")], name="b")] + ) + idx2 = MultiIndex.from_arrays( + [idx._get_level_values(level) for level in range(idx.nlevels)] + ) + assert all(x.is_monotonic_increasing for x in idx2.levels) + + +def test_values_loses_freq_of_underlying_index(): + # GH#49054 + idx = pd.DatetimeIndex(date_range("20200101", periods=3, freq="BME")) + expected = idx.copy(deep=True) + idx2 = Index([1, 2, 3]) + midx = MultiIndex(levels=[idx, idx2], codes=[[0, 1, 2], [0, 1, 2]]) + midx.values + assert idx.freq is not None + tm.assert_index_equal(idx, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_get_set.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_get_set.py new file mode 100644 index 0000000000000000000000000000000000000000..17ca87648733025f8d9a4fd897e07660c38ac132 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_get_set.py @@ -0,0 +1,384 @@ +import numpy as np +import pytest + +from pandas.compat import PY311 + +from pandas.core.dtypes.dtypes import DatetimeTZDtype + +import pandas as pd +from pandas import ( + CategoricalIndex, + MultiIndex, +) +import pandas._testing as tm + + +def assert_matching(actual, expected, check_dtype=False): + # avoid specifying internal representation + # as much as possible + assert len(actual) == len(expected) + for act, exp in zip(actual, expected): + act = np.asarray(act) + exp = np.asarray(exp) + tm.assert_numpy_array_equal(act, exp, check_dtype=check_dtype) + + +def test_get_level_number_integer(idx): + idx.names = [1, 0] + assert idx._get_level_number(1) == 0 + assert idx._get_level_number(0) == 1 + msg = "Too many levels: Index has only 2 levels, not 3" + with pytest.raises(IndexError, match=msg): + idx._get_level_number(2) + with pytest.raises(KeyError, match="Level fourth not found"): + idx._get_level_number("fourth") + + +def test_get_dtypes(using_infer_string): + # Test MultiIndex.dtypes (# Gh37062) + idx_multitype = MultiIndex.from_product( + [[1, 2, 3], ["a", "b", "c"], pd.date_range("20200101", periods=2, tz="UTC")], + names=["int", "string", "dt"], + ) + + exp = "object" if not using_infer_string else pd.StringDtype(na_value=np.nan) + expected = pd.Series( + { + "int": np.dtype("int64"), + "string": exp, + "dt": DatetimeTZDtype(tz="utc"), + } + ) + tm.assert_series_equal(expected, idx_multitype.dtypes) + + +def test_get_dtypes_no_level_name(using_infer_string): + # Test MultiIndex.dtypes (# GH38580 ) + idx_multitype = MultiIndex.from_product( + [ + [1, 2, 3], + ["a", "b", "c"], + pd.date_range("20200101", periods=2, tz="UTC"), + ], + ) + exp = "object" if not using_infer_string else pd.StringDtype(na_value=np.nan) + expected = pd.Series( + { + "level_0": np.dtype("int64"), + "level_1": exp, + "level_2": DatetimeTZDtype(tz="utc"), + } + ) + tm.assert_series_equal(expected, idx_multitype.dtypes) + + +def test_get_dtypes_duplicate_level_names(using_infer_string): + # Test MultiIndex.dtypes with non-unique level names (# GH45174) + result = MultiIndex.from_product( + [ + [1, 2, 3], + ["a", "b", "c"], + pd.date_range("20200101", periods=2, tz="UTC"), + ], + names=["A", "A", "A"], + ).dtypes + exp = "object" if not using_infer_string else pd.StringDtype(na_value=np.nan) + expected = pd.Series( + [np.dtype("int64"), exp, DatetimeTZDtype(tz="utc")], + index=["A", "A", "A"], + ) + tm.assert_series_equal(result, expected) + + +def test_get_level_number_out_of_bounds(multiindex_dataframe_random_data): + frame = multiindex_dataframe_random_data + + with pytest.raises(IndexError, match="Too many levels"): + frame.index._get_level_number(2) + with pytest.raises(IndexError, match="not a valid level number"): + frame.index._get_level_number(-3) + + +def test_set_name_methods(idx): + # so long as these are synonyms, we don't need to test set_names + index_names = ["first", "second"] + assert idx.rename == idx.set_names + new_names = [name + "SUFFIX" for name in index_names] + ind = idx.set_names(new_names) + assert idx.names == index_names + assert ind.names == new_names + msg = "Length of names must match number of levels in MultiIndex" + with pytest.raises(ValueError, match=msg): + ind.set_names(new_names + new_names) + new_names2 = [name + "SUFFIX2" for name in new_names] + res = ind.set_names(new_names2, inplace=True) + assert res is None + assert ind.names == new_names2 + + # set names for specific level (# GH7792) + ind = idx.set_names(new_names[0], level=0) + assert idx.names == index_names + assert ind.names == [new_names[0], index_names[1]] + + res = ind.set_names(new_names2[0], level=0, inplace=True) + assert res is None + assert ind.names == [new_names2[0], index_names[1]] + + # set names for multiple levels + ind = idx.set_names(new_names, level=[0, 1]) + assert idx.names == index_names + assert ind.names == new_names + + res = ind.set_names(new_names2, level=[0, 1], inplace=True) + assert res is None + assert ind.names == new_names2 + + +def test_set_levels_codes_directly(idx): + # setting levels/codes directly raises AttributeError + + levels = idx.levels + new_levels = [[lev + "a" for lev in level] for level in levels] + + codes = idx.codes + major_codes, minor_codes = codes + major_codes = [(x + 1) % 3 for x in major_codes] + minor_codes = [(x + 1) % 1 for x in minor_codes] + new_codes = [major_codes, minor_codes] + + msg = "Can't set attribute" + with pytest.raises(AttributeError, match=msg): + idx.levels = new_levels + + msg = ( + "property 'codes' of 'MultiIndex' object has no setter" + if PY311 + else "can't set attribute" + ) + with pytest.raises(AttributeError, match=msg): + idx.codes = new_codes + + +def test_set_levels(idx): + # side note - you probably wouldn't want to use levels and codes + # directly like this - but it is possible. + levels = idx.levels + new_levels = [[lev + "a" for lev in level] for level in levels] + + # level changing [w/o mutation] + ind2 = idx.set_levels(new_levels) + assert_matching(ind2.levels, new_levels) + assert_matching(idx.levels, levels) + + # level changing specific level [w/o mutation] + ind2 = idx.set_levels(new_levels[0], level=0) + assert_matching(ind2.levels, [new_levels[0], levels[1]]) + assert_matching(idx.levels, levels) + + ind2 = idx.set_levels(new_levels[1], level=1) + assert_matching(ind2.levels, [levels[0], new_levels[1]]) + assert_matching(idx.levels, levels) + + # level changing multiple levels [w/o mutation] + ind2 = idx.set_levels(new_levels, level=[0, 1]) + assert_matching(ind2.levels, new_levels) + assert_matching(idx.levels, levels) + + # illegal level changing should not change levels + # GH 13754 + original_index = idx.copy() + with pytest.raises(ValueError, match="^On"): + idx.set_levels(["c"], level=0) + assert_matching(idx.levels, original_index.levels, check_dtype=True) + + with pytest.raises(ValueError, match="^On"): + idx.set_codes([0, 1, 2, 3, 4, 5], level=0) + assert_matching(idx.codes, original_index.codes, check_dtype=True) + + with pytest.raises(TypeError, match="^Levels"): + idx.set_levels("c", level=0) + assert_matching(idx.levels, original_index.levels, check_dtype=True) + + with pytest.raises(TypeError, match="^Codes"): + idx.set_codes(1, level=0) + assert_matching(idx.codes, original_index.codes, check_dtype=True) + + +def test_set_codes(idx): + # side note - you probably wouldn't want to use levels and codes + # directly like this - but it is possible. + codes = idx.codes + major_codes, minor_codes = codes + major_codes = [(x + 1) % 3 for x in major_codes] + minor_codes = [(x + 1) % 1 for x in minor_codes] + new_codes = [major_codes, minor_codes] + + # changing codes w/o mutation + ind2 = idx.set_codes(new_codes) + assert_matching(ind2.codes, new_codes) + assert_matching(idx.codes, codes) + + # codes changing specific level w/o mutation + ind2 = idx.set_codes(new_codes[0], level=0) + assert_matching(ind2.codes, [new_codes[0], codes[1]]) + assert_matching(idx.codes, codes) + + ind2 = idx.set_codes(new_codes[1], level=1) + assert_matching(ind2.codes, [codes[0], new_codes[1]]) + assert_matching(idx.codes, codes) + + # codes changing multiple levels w/o mutation + ind2 = idx.set_codes(new_codes, level=[0, 1]) + assert_matching(ind2.codes, new_codes) + assert_matching(idx.codes, codes) + + # label changing for levels of different magnitude of categories + ind = MultiIndex.from_tuples([(0, i) for i in range(130)]) + new_codes = range(129, -1, -1) + expected = MultiIndex.from_tuples([(0, i) for i in new_codes]) + + # [w/o mutation] + result = ind.set_codes(codes=new_codes, level=1) + assert result.equals(expected) + + +def test_set_levels_codes_names_bad_input(idx): + levels, codes = idx.levels, idx.codes + names = idx.names + + with pytest.raises(ValueError, match="Length of levels"): + idx.set_levels([levels[0]]) + + with pytest.raises(ValueError, match="Length of codes"): + idx.set_codes([codes[0]]) + + with pytest.raises(ValueError, match="Length of names"): + idx.set_names([names[0]]) + + # shouldn't scalar data error, instead should demand list-like + with pytest.raises(TypeError, match="list of lists-like"): + idx.set_levels(levels[0]) + + # shouldn't scalar data error, instead should demand list-like + with pytest.raises(TypeError, match="list of lists-like"): + idx.set_codes(codes[0]) + + # shouldn't scalar data error, instead should demand list-like + with pytest.raises(TypeError, match="list-like"): + idx.set_names(names[0]) + + # should have equal lengths + with pytest.raises(TypeError, match="list of lists-like"): + idx.set_levels(levels[0], level=[0, 1]) + + with pytest.raises(TypeError, match="list-like"): + idx.set_levels(levels, level=0) + + # should have equal lengths + with pytest.raises(TypeError, match="list of lists-like"): + idx.set_codes(codes[0], level=[0, 1]) + + with pytest.raises(TypeError, match="list-like"): + idx.set_codes(codes, level=0) + + # should have equal lengths + with pytest.raises(ValueError, match="Length of names"): + idx.set_names(names[0], level=[0, 1]) + + with pytest.raises(TypeError, match="Names must be a"): + idx.set_names(names, level=0) + + +@pytest.mark.parametrize("inplace", [True, False]) +def test_set_names_with_nlevel_1(inplace): + # GH 21149 + # Ensure that .set_names for MultiIndex with + # nlevels == 1 does not raise any errors + expected = MultiIndex(levels=[[0, 1]], codes=[[0, 1]], names=["first"]) + m = MultiIndex.from_product([[0, 1]]) + result = m.set_names("first", level=0, inplace=inplace) + + if inplace: + result = m + + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize("ordered", [True, False]) +def test_set_levels_categorical(ordered): + # GH13854 + index = MultiIndex.from_arrays([list("xyzx"), [0, 1, 2, 3]]) + + cidx = CategoricalIndex(list("bac"), ordered=ordered) + result = index.set_levels(cidx, level=0) + expected = MultiIndex(levels=[cidx, [0, 1, 2, 3]], codes=index.codes) + tm.assert_index_equal(result, expected) + + result_lvl = result.get_level_values(0) + expected_lvl = CategoricalIndex( + list("bacb"), categories=cidx.categories, ordered=cidx.ordered + ) + tm.assert_index_equal(result_lvl, expected_lvl) + + +def test_set_value_keeps_names(): + # motivating example from #3742 + lev1 = ["hans", "hans", "hans", "grethe", "grethe", "grethe"] + lev2 = ["1", "2", "3"] * 2 + idx = MultiIndex.from_arrays([lev1, lev2], names=["Name", "Number"]) + df = pd.DataFrame( + np.random.default_rng(2).standard_normal((6, 4)), + columns=["one", "two", "three", "four"], + index=idx, + ) + df = df.sort_index() + assert df._is_copy is None + assert df.index.names == ("Name", "Number") + df.at[("grethe", "4"), "one"] = 99.34 + assert df._is_copy is None + assert df.index.names == ("Name", "Number") + + +def test_set_levels_with_iterable(): + # GH23273 + sizes = [1, 2, 3] + colors = ["black"] * 3 + index = MultiIndex.from_arrays([sizes, colors], names=["size", "color"]) + + result = index.set_levels(map(int, ["3", "2", "1"]), level="size") + + expected_sizes = [3, 2, 1] + expected = MultiIndex.from_arrays([expected_sizes, colors], names=["size", "color"]) + tm.assert_index_equal(result, expected) + + +def test_set_empty_level(): + # GH#48636 + midx = MultiIndex.from_arrays([[]], names=["A"]) + result = midx.set_levels(pd.DatetimeIndex([]), level=0) + expected = MultiIndex.from_arrays([pd.DatetimeIndex([])], names=["A"]) + tm.assert_index_equal(result, expected) + + +def test_set_levels_pos_args_removal(): + # https://github.com/pandas-dev/pandas/issues/41485 + idx = MultiIndex.from_tuples( + [ + (1, "one"), + (3, "one"), + ], + names=["foo", "bar"], + ) + with pytest.raises(TypeError, match="positional arguments"): + idx.set_levels(["a", "b", "c"], 0) + + with pytest.raises(TypeError, match="positional arguments"): + idx.set_codes([[0, 1], [1, 0]], 0) + + +def test_set_levels_categorical_keep_dtype(): + # GH#52125 + midx = MultiIndex.from_arrays([[5, 6]]) + result = midx.set_levels(levels=pd.Categorical([1, 2]), level=0) + expected = MultiIndex.from_arrays([pd.Categorical([1, 2])]) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_indexing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_indexing.py new file mode 100644 index 0000000000000000000000000000000000000000..5e2d3c23da6452a4155af2674b7ce4a6dd7d2680 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_indexing.py @@ -0,0 +1,1001 @@ +from datetime import timedelta +import re + +import numpy as np +import pytest + +from pandas._libs import index as libindex +from pandas.errors import ( + InvalidIndexError, + PerformanceWarning, +) + +import pandas as pd +from pandas import ( + Categorical, + DataFrame, + Index, + MultiIndex, + date_range, +) +import pandas._testing as tm + + +class TestSliceLocs: + def test_slice_locs_partial(self, idx): + sorted_idx, _ = idx.sortlevel(0) + + result = sorted_idx.slice_locs(("foo", "two"), ("qux", "one")) + assert result == (1, 5) + + result = sorted_idx.slice_locs(None, ("qux", "one")) + assert result == (0, 5) + + result = sorted_idx.slice_locs(("foo", "two"), None) + assert result == (1, len(sorted_idx)) + + result = sorted_idx.slice_locs("bar", "baz") + assert result == (2, 4) + + def test_slice_locs(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((50, 4)), + columns=Index(list("ABCD"), dtype=object), + index=date_range("2000-01-01", periods=50, freq="B"), + ) + stacked = df.stack(future_stack=True) + idx = stacked.index + + slob = slice(*idx.slice_locs(df.index[5], df.index[15])) + sliced = stacked[slob] + expected = df[5:16].stack(future_stack=True) + tm.assert_almost_equal(sliced.values, expected.values) + + slob = slice( + *idx.slice_locs( + df.index[5] + timedelta(seconds=30), + df.index[15] - timedelta(seconds=30), + ) + ) + sliced = stacked[slob] + expected = df[6:15].stack(future_stack=True) + tm.assert_almost_equal(sliced.values, expected.values) + + def test_slice_locs_with_type_mismatch(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 4)), + columns=Index(list("ABCD"), dtype=object), + index=date_range("2000-01-01", periods=10, freq="B"), + ) + stacked = df.stack(future_stack=True) + idx = stacked.index + with pytest.raises(TypeError, match="^Level type mismatch"): + idx.slice_locs((1, 3)) + with pytest.raises(TypeError, match="^Level type mismatch"): + idx.slice_locs(df.index[5] + timedelta(seconds=30), (5, 2)) + df = DataFrame( + np.ones((5, 5)), + index=Index([f"i-{i}" for i in range(5)], name="a"), + columns=Index([f"i-{i}" for i in range(5)], name="a"), + ) + stacked = df.stack(future_stack=True) + idx = stacked.index + with pytest.raises(TypeError, match="^Level type mismatch"): + idx.slice_locs(timedelta(seconds=30)) + # TODO: Try creating a UnicodeDecodeError in exception message + with pytest.raises(TypeError, match="^Level type mismatch"): + idx.slice_locs(df.index[1], (16, "a")) + + def test_slice_locs_not_sorted(self): + index = MultiIndex( + levels=[Index(np.arange(4)), Index(np.arange(4)), Index(np.arange(4))], + codes=[ + np.array([0, 0, 1, 2, 2, 2, 3, 3]), + np.array([0, 1, 0, 0, 0, 1, 0, 1]), + np.array([1, 0, 1, 1, 0, 0, 1, 0]), + ], + ) + msg = "[Kk]ey length.*greater than MultiIndex lexsort depth" + with pytest.raises(KeyError, match=msg): + index.slice_locs((1, 0, 1), (2, 1, 0)) + + # works + sorted_index, _ = index.sortlevel(0) + # should there be a test case here??? + sorted_index.slice_locs((1, 0, 1), (2, 1, 0)) + + def test_slice_locs_not_contained(self): + # some searchsorted action + + index = MultiIndex( + levels=[[0, 2, 4, 6], [0, 2, 4]], + codes=[[0, 0, 0, 1, 1, 2, 3, 3, 3], [0, 1, 2, 1, 2, 2, 0, 1, 2]], + ) + + result = index.slice_locs((1, 0), (5, 2)) + assert result == (3, 6) + + result = index.slice_locs(1, 5) + assert result == (3, 6) + + result = index.slice_locs((2, 2), (5, 2)) + assert result == (3, 6) + + result = index.slice_locs(2, 5) + assert result == (3, 6) + + result = index.slice_locs((1, 0), (6, 3)) + assert result == (3, 8) + + result = index.slice_locs(-1, 10) + assert result == (0, len(index)) + + @pytest.mark.parametrize( + "index_arr,expected,start_idx,end_idx", + [ + ([[np.nan, "a", "b"], ["c", "d", "e"]], (0, 3), np.nan, None), + ([[np.nan, "a", "b"], ["c", "d", "e"]], (0, 3), np.nan, "b"), + ([[np.nan, "a", "b"], ["c", "d", "e"]], (0, 3), np.nan, ("b", "e")), + ([["a", "b", "c"], ["d", np.nan, "e"]], (1, 3), ("b", np.nan), None), + ([["a", "b", "c"], ["d", np.nan, "e"]], (1, 3), ("b", np.nan), "c"), + ([["a", "b", "c"], ["d", np.nan, "e"]], (1, 3), ("b", np.nan), ("c", "e")), + ], + ) + def test_slice_locs_with_missing_value( + self, index_arr, expected, start_idx, end_idx + ): + # issue 19132 + idx = MultiIndex.from_arrays(index_arr) + result = idx.slice_locs(start=start_idx, end=end_idx) + assert result == expected + + +class TestPutmask: + def test_putmask_with_wrong_mask(self, idx): + # GH18368 + + msg = "putmask: mask and data must be the same size" + with pytest.raises(ValueError, match=msg): + idx.putmask(np.ones(len(idx) + 1, np.bool_), 1) + + with pytest.raises(ValueError, match=msg): + idx.putmask(np.ones(len(idx) - 1, np.bool_), 1) + + with pytest.raises(ValueError, match=msg): + idx.putmask("foo", 1) + + def test_putmask_multiindex_other(self): + # GH#43212 `value` is also a MultiIndex + + left = MultiIndex.from_tuples([(np.nan, 6), (np.nan, 6), ("a", 4)]) + right = MultiIndex.from_tuples([("a", 1), ("a", 1), ("d", 1)]) + mask = np.array([True, True, False]) + + result = left.putmask(mask, right) + + expected = MultiIndex.from_tuples([right[0], right[1], left[2]]) + tm.assert_index_equal(result, expected) + + def test_putmask_keep_dtype(self, any_numeric_ea_dtype): + # GH#49830 + midx = MultiIndex.from_arrays( + [pd.Series([1, 2, 3], dtype=any_numeric_ea_dtype), [10, 11, 12]] + ) + midx2 = MultiIndex.from_arrays( + [pd.Series([5, 6, 7], dtype=any_numeric_ea_dtype), [-1, -2, -3]] + ) + result = midx.putmask([True, False, False], midx2) + expected = MultiIndex.from_arrays( + [pd.Series([5, 2, 3], dtype=any_numeric_ea_dtype), [-1, 11, 12]] + ) + tm.assert_index_equal(result, expected) + + def test_putmask_keep_dtype_shorter_value(self, any_numeric_ea_dtype): + # GH#49830 + midx = MultiIndex.from_arrays( + [pd.Series([1, 2, 3], dtype=any_numeric_ea_dtype), [10, 11, 12]] + ) + midx2 = MultiIndex.from_arrays( + [pd.Series([5], dtype=any_numeric_ea_dtype), [-1]] + ) + result = midx.putmask([True, False, False], midx2) + expected = MultiIndex.from_arrays( + [pd.Series([5, 2, 3], dtype=any_numeric_ea_dtype), [-1, 11, 12]] + ) + tm.assert_index_equal(result, expected) + + +class TestGetIndexer: + def test_get_indexer(self): + major_axis = Index(np.arange(4)) + minor_axis = Index(np.arange(2)) + + major_codes = np.array([0, 0, 1, 2, 2, 3, 3], dtype=np.intp) + minor_codes = np.array([0, 1, 0, 0, 1, 0, 1], dtype=np.intp) + + index = MultiIndex( + levels=[major_axis, minor_axis], codes=[major_codes, minor_codes] + ) + idx1 = index[:5] + idx2 = index[[1, 3, 5]] + + r1 = idx1.get_indexer(idx2) + tm.assert_almost_equal(r1, np.array([1, 3, -1], dtype=np.intp)) + + r1 = idx2.get_indexer(idx1, method="pad") + e1 = np.array([-1, 0, 0, 1, 1], dtype=np.intp) + tm.assert_almost_equal(r1, e1) + + r2 = idx2.get_indexer(idx1[::-1], method="pad") + tm.assert_almost_equal(r2, e1[::-1]) + + rffill1 = idx2.get_indexer(idx1, method="ffill") + tm.assert_almost_equal(r1, rffill1) + + r1 = idx2.get_indexer(idx1, method="backfill") + e1 = np.array([0, 0, 1, 1, 2], dtype=np.intp) + tm.assert_almost_equal(r1, e1) + + r2 = idx2.get_indexer(idx1[::-1], method="backfill") + tm.assert_almost_equal(r2, e1[::-1]) + + rbfill1 = idx2.get_indexer(idx1, method="bfill") + tm.assert_almost_equal(r1, rbfill1) + + # pass non-MultiIndex + r1 = idx1.get_indexer(idx2.values) + rexp1 = idx1.get_indexer(idx2) + tm.assert_almost_equal(r1, rexp1) + + r1 = idx1.get_indexer([1, 2, 3]) + assert (r1 == [-1, -1, -1]).all() + + # create index with duplicates + idx1 = Index(list(range(10)) + list(range(10))) + idx2 = Index(list(range(20))) + + msg = "Reindexing only valid with uniquely valued Index objects" + with pytest.raises(InvalidIndexError, match=msg): + idx1.get_indexer(idx2) + + def test_get_indexer_nearest(self): + midx = MultiIndex.from_tuples([("a", 1), ("b", 2)]) + msg = ( + "method='nearest' not implemented yet for MultiIndex; " + "see GitHub issue 9365" + ) + with pytest.raises(NotImplementedError, match=msg): + midx.get_indexer(["a"], method="nearest") + msg = "tolerance not implemented yet for MultiIndex" + with pytest.raises(NotImplementedError, match=msg): + midx.get_indexer(["a"], method="pad", tolerance=2) + + def test_get_indexer_categorical_time(self): + # https://github.com/pandas-dev/pandas/issues/21390 + midx = MultiIndex.from_product( + [ + Categorical(["a", "b", "c"]), + Categorical(date_range("2012-01-01", periods=3, freq="h")), + ] + ) + result = midx.get_indexer(midx) + tm.assert_numpy_array_equal(result, np.arange(9, dtype=np.intp)) + + @pytest.mark.parametrize( + "index_arr,labels,expected", + [ + ( + [[1, np.nan, 2], [3, 4, 5]], + [1, np.nan, 2], + np.array([-1, -1, -1], dtype=np.intp), + ), + ([[1, np.nan, 2], [3, 4, 5]], [(np.nan, 4)], np.array([1], dtype=np.intp)), + ([[1, 2, 3], [np.nan, 4, 5]], [(1, np.nan)], np.array([0], dtype=np.intp)), + ( + [[1, 2, 3], [np.nan, 4, 5]], + [np.nan, 4, 5], + np.array([-1, -1, -1], dtype=np.intp), + ), + ], + ) + def test_get_indexer_with_missing_value(self, index_arr, labels, expected): + # issue 19132 + idx = MultiIndex.from_arrays(index_arr) + result = idx.get_indexer(labels) + tm.assert_numpy_array_equal(result, expected) + + def test_get_indexer_methods(self): + # https://github.com/pandas-dev/pandas/issues/29896 + # test getting an indexer for another index with different methods + # confirms that getting an indexer without a filling method, getting an + # indexer and backfilling, and getting an indexer and padding all behave + # correctly in the case where all of the target values fall in between + # several levels in the MultiIndex into which they are getting an indexer + # + # visually, the MultiIndexes used in this test are: + # mult_idx_1: + # 0: -1 0 + # 1: 2 + # 2: 3 + # 3: 4 + # 4: 0 0 + # 5: 2 + # 6: 3 + # 7: 4 + # 8: 1 0 + # 9: 2 + # 10: 3 + # 11: 4 + # + # mult_idx_2: + # 0: 0 1 + # 1: 3 + # 2: 4 + mult_idx_1 = MultiIndex.from_product([[-1, 0, 1], [0, 2, 3, 4]]) + mult_idx_2 = MultiIndex.from_product([[0], [1, 3, 4]]) + + indexer = mult_idx_1.get_indexer(mult_idx_2) + expected = np.array([-1, 6, 7], dtype=indexer.dtype) + tm.assert_almost_equal(expected, indexer) + + backfill_indexer = mult_idx_1.get_indexer(mult_idx_2, method="backfill") + expected = np.array([5, 6, 7], dtype=backfill_indexer.dtype) + tm.assert_almost_equal(expected, backfill_indexer) + + # ensure the legacy "bfill" option functions identically to "backfill" + backfill_indexer = mult_idx_1.get_indexer(mult_idx_2, method="bfill") + expected = np.array([5, 6, 7], dtype=backfill_indexer.dtype) + tm.assert_almost_equal(expected, backfill_indexer) + + pad_indexer = mult_idx_1.get_indexer(mult_idx_2, method="pad") + expected = np.array([4, 6, 7], dtype=pad_indexer.dtype) + tm.assert_almost_equal(expected, pad_indexer) + + # ensure the legacy "ffill" option functions identically to "pad" + pad_indexer = mult_idx_1.get_indexer(mult_idx_2, method="ffill") + expected = np.array([4, 6, 7], dtype=pad_indexer.dtype) + tm.assert_almost_equal(expected, pad_indexer) + + @pytest.mark.parametrize("method", ["pad", "ffill", "backfill", "bfill", "nearest"]) + def test_get_indexer_methods_raise_for_non_monotonic(self, method): + # 53452 + mi = MultiIndex.from_arrays([[0, 4, 2], [0, 4, 2]]) + if method == "nearest": + err = NotImplementedError + msg = "not implemented yet for MultiIndex" + else: + err = ValueError + msg = "index must be monotonic increasing or decreasing" + with pytest.raises(err, match=msg): + mi.get_indexer([(1, 1)], method=method) + + def test_get_indexer_three_or_more_levels(self): + # https://github.com/pandas-dev/pandas/issues/29896 + # tests get_indexer() on MultiIndexes with 3+ levels + # visually, these are + # mult_idx_1: + # 0: 1 2 5 + # 1: 7 + # 2: 4 5 + # 3: 7 + # 4: 6 5 + # 5: 7 + # 6: 3 2 5 + # 7: 7 + # 8: 4 5 + # 9: 7 + # 10: 6 5 + # 11: 7 + # + # mult_idx_2: + # 0: 1 1 8 + # 1: 1 5 9 + # 2: 1 6 7 + # 3: 2 1 6 + # 4: 2 7 6 + # 5: 2 7 8 + # 6: 3 6 8 + mult_idx_1 = MultiIndex.from_product([[1, 3], [2, 4, 6], [5, 7]]) + mult_idx_2 = MultiIndex.from_tuples( + [ + (1, 1, 8), + (1, 5, 9), + (1, 6, 7), + (2, 1, 6), + (2, 7, 7), + (2, 7, 8), + (3, 6, 8), + ] + ) + # sanity check + assert mult_idx_1.is_monotonic_increasing + assert mult_idx_1.is_unique + assert mult_idx_2.is_monotonic_increasing + assert mult_idx_2.is_unique + + # show the relationships between the two + assert mult_idx_2[0] < mult_idx_1[0] + assert mult_idx_1[3] < mult_idx_2[1] < mult_idx_1[4] + assert mult_idx_1[5] == mult_idx_2[2] + assert mult_idx_1[5] < mult_idx_2[3] < mult_idx_1[6] + assert mult_idx_1[5] < mult_idx_2[4] < mult_idx_1[6] + assert mult_idx_1[5] < mult_idx_2[5] < mult_idx_1[6] + assert mult_idx_1[-1] < mult_idx_2[6] + + indexer_no_fill = mult_idx_1.get_indexer(mult_idx_2) + expected = np.array([-1, -1, 5, -1, -1, -1, -1], dtype=indexer_no_fill.dtype) + tm.assert_almost_equal(expected, indexer_no_fill) + + # test with backfilling + indexer_backfilled = mult_idx_1.get_indexer(mult_idx_2, method="backfill") + expected = np.array([0, 4, 5, 6, 6, 6, -1], dtype=indexer_backfilled.dtype) + tm.assert_almost_equal(expected, indexer_backfilled) + + # now, the same thing, but forward-filled (aka "padded") + indexer_padded = mult_idx_1.get_indexer(mult_idx_2, method="pad") + expected = np.array([-1, 3, 5, 5, 5, 5, 11], dtype=indexer_padded.dtype) + tm.assert_almost_equal(expected, indexer_padded) + + # now, do the indexing in the other direction + assert mult_idx_2[0] < mult_idx_1[0] < mult_idx_2[1] + assert mult_idx_2[0] < mult_idx_1[1] < mult_idx_2[1] + assert mult_idx_2[0] < mult_idx_1[2] < mult_idx_2[1] + assert mult_idx_2[0] < mult_idx_1[3] < mult_idx_2[1] + assert mult_idx_2[1] < mult_idx_1[4] < mult_idx_2[2] + assert mult_idx_2[2] == mult_idx_1[5] + assert mult_idx_2[5] < mult_idx_1[6] < mult_idx_2[6] + assert mult_idx_2[5] < mult_idx_1[7] < mult_idx_2[6] + assert mult_idx_2[5] < mult_idx_1[8] < mult_idx_2[6] + assert mult_idx_2[5] < mult_idx_1[9] < mult_idx_2[6] + assert mult_idx_2[5] < mult_idx_1[10] < mult_idx_2[6] + assert mult_idx_2[5] < mult_idx_1[11] < mult_idx_2[6] + + indexer = mult_idx_2.get_indexer(mult_idx_1) + expected = np.array( + [-1, -1, -1, -1, -1, 2, -1, -1, -1, -1, -1, -1], dtype=indexer.dtype + ) + tm.assert_almost_equal(expected, indexer) + + backfill_indexer = mult_idx_2.get_indexer(mult_idx_1, method="bfill") + expected = np.array( + [1, 1, 1, 1, 2, 2, 6, 6, 6, 6, 6, 6], dtype=backfill_indexer.dtype + ) + tm.assert_almost_equal(expected, backfill_indexer) + + pad_indexer = mult_idx_2.get_indexer(mult_idx_1, method="pad") + expected = np.array( + [0, 0, 0, 0, 1, 2, 5, 5, 5, 5, 5, 5], dtype=pad_indexer.dtype + ) + tm.assert_almost_equal(expected, pad_indexer) + + def test_get_indexer_crossing_levels(self): + # https://github.com/pandas-dev/pandas/issues/29896 + # tests a corner case with get_indexer() with MultiIndexes where, when we + # need to "carry" across levels, proper tuple ordering is respected + # + # the MultiIndexes used in this test, visually, are: + # mult_idx_1: + # 0: 1 1 1 1 + # 1: 2 + # 2: 2 1 + # 3: 2 + # 4: 1 2 1 1 + # 5: 2 + # 6: 2 1 + # 7: 2 + # 8: 2 1 1 1 + # 9: 2 + # 10: 2 1 + # 11: 2 + # 12: 2 2 1 1 + # 13: 2 + # 14: 2 1 + # 15: 2 + # + # mult_idx_2: + # 0: 1 3 2 2 + # 1: 2 3 2 2 + mult_idx_1 = MultiIndex.from_product([[1, 2]] * 4) + mult_idx_2 = MultiIndex.from_tuples([(1, 3, 2, 2), (2, 3, 2, 2)]) + + # show the tuple orderings, which get_indexer() should respect + assert mult_idx_1[7] < mult_idx_2[0] < mult_idx_1[8] + assert mult_idx_1[-1] < mult_idx_2[1] + + indexer = mult_idx_1.get_indexer(mult_idx_2) + expected = np.array([-1, -1], dtype=indexer.dtype) + tm.assert_almost_equal(expected, indexer) + + backfill_indexer = mult_idx_1.get_indexer(mult_idx_2, method="bfill") + expected = np.array([8, -1], dtype=backfill_indexer.dtype) + tm.assert_almost_equal(expected, backfill_indexer) + + pad_indexer = mult_idx_1.get_indexer(mult_idx_2, method="ffill") + expected = np.array([7, 15], dtype=pad_indexer.dtype) + tm.assert_almost_equal(expected, pad_indexer) + + def test_get_indexer_kwarg_validation(self): + # GH#41918 + mi = MultiIndex.from_product([range(3), ["A", "B"]]) + + msg = "limit argument only valid if doing pad, backfill or nearest" + with pytest.raises(ValueError, match=msg): + mi.get_indexer(mi[:-1], limit=4) + + msg = "tolerance argument only valid if doing pad, backfill or nearest" + with pytest.raises(ValueError, match=msg): + mi.get_indexer(mi[:-1], tolerance="piano") + + def test_get_indexer_nan(self): + # GH#37222 + idx1 = MultiIndex.from_product([["A"], [1.0, 2.0]], names=["id1", "id2"]) + idx2 = MultiIndex.from_product([["A"], [np.nan, 2.0]], names=["id1", "id2"]) + expected = np.array([-1, 1]) + result = idx2.get_indexer(idx1) + tm.assert_numpy_array_equal(result, expected, check_dtype=False) + result = idx1.get_indexer(idx2) + tm.assert_numpy_array_equal(result, expected, check_dtype=False) + + +def test_getitem(idx): + # scalar + assert idx[2] == ("bar", "one") + + # slice + result = idx[2:5] + expected = idx[[2, 3, 4]] + assert result.equals(expected) + + # boolean + result = idx[[True, False, True, False, True, True]] + result2 = idx[np.array([True, False, True, False, True, True])] + expected = idx[[0, 2, 4, 5]] + assert result.equals(expected) + assert result2.equals(expected) + + +def test_getitem_group_select(idx): + sorted_idx, _ = idx.sortlevel(0) + assert sorted_idx.get_loc("baz") == slice(3, 4) + assert sorted_idx.get_loc("foo") == slice(0, 2) + + +@pytest.mark.parametrize("ind1", [[True] * 5, Index([True] * 5)]) +@pytest.mark.parametrize( + "ind2", + [[True, False, True, False, False], Index([True, False, True, False, False])], +) +def test_getitem_bool_index_all(ind1, ind2): + # GH#22533 + idx = MultiIndex.from_tuples([(10, 1), (20, 2), (30, 3), (40, 4), (50, 5)]) + tm.assert_index_equal(idx[ind1], idx) + + expected = MultiIndex.from_tuples([(10, 1), (30, 3)]) + tm.assert_index_equal(idx[ind2], expected) + + +@pytest.mark.parametrize("ind1", [[True], Index([True])]) +@pytest.mark.parametrize("ind2", [[False], Index([False])]) +def test_getitem_bool_index_single(ind1, ind2): + # GH#22533 + idx = MultiIndex.from_tuples([(10, 1)]) + tm.assert_index_equal(idx[ind1], idx) + + expected = MultiIndex( + levels=[np.array([], dtype=np.int64), np.array([], dtype=np.int64)], + codes=[[], []], + ) + tm.assert_index_equal(idx[ind2], expected) + + +class TestGetLoc: + def test_get_loc(self, idx): + assert idx.get_loc(("foo", "two")) == 1 + assert idx.get_loc(("baz", "two")) == 3 + with pytest.raises(KeyError, match=r"^\('bar', 'two'\)$"): + idx.get_loc(("bar", "two")) + with pytest.raises(KeyError, match=r"^'quux'$"): + idx.get_loc("quux") + + # 3 levels + index = MultiIndex( + levels=[Index(np.arange(4)), Index(np.arange(4)), Index(np.arange(4))], + codes=[ + np.array([0, 0, 1, 2, 2, 2, 3, 3]), + np.array([0, 1, 0, 0, 0, 1, 0, 1]), + np.array([1, 0, 1, 1, 0, 0, 1, 0]), + ], + ) + with pytest.raises(KeyError, match=r"^\(1, 1\)$"): + index.get_loc((1, 1)) + assert index.get_loc((2, 0)) == slice(3, 5) + + def test_get_loc_duplicates(self): + index = Index([2, 2, 2, 2]) + result = index.get_loc(2) + expected = slice(0, 4) + assert result == expected + + index = Index(["c", "a", "a", "b", "b"]) + rs = index.get_loc("c") + xp = 0 + assert rs == xp + + with pytest.raises(KeyError, match="2"): + index.get_loc(2) + + def test_get_loc_level(self): + index = MultiIndex( + levels=[Index(np.arange(4)), Index(np.arange(4)), Index(np.arange(4))], + codes=[ + np.array([0, 0, 1, 2, 2, 2, 3, 3]), + np.array([0, 1, 0, 0, 0, 1, 0, 1]), + np.array([1, 0, 1, 1, 0, 0, 1, 0]), + ], + ) + loc, new_index = index.get_loc_level((0, 1)) + expected = slice(1, 2) + exp_index = index[expected].droplevel(0).droplevel(0) + assert loc == expected + assert new_index.equals(exp_index) + + loc, new_index = index.get_loc_level((0, 1, 0)) + expected = 1 + assert loc == expected + assert new_index is None + + with pytest.raises(KeyError, match=r"^\(2, 2\)$"): + index.get_loc_level((2, 2)) + # GH 22221: unused label + with pytest.raises(KeyError, match=r"^2$"): + index.drop(2).get_loc_level(2) + # Unused label on unsorted level: + with pytest.raises(KeyError, match=r"^2$"): + index.drop(1, level=2).get_loc_level(2, level=2) + + index = MultiIndex( + levels=[[2000], list(range(4))], + codes=[np.array([0, 0, 0, 0]), np.array([0, 1, 2, 3])], + ) + result, new_index = index.get_loc_level((2000, slice(None, None))) + expected = slice(None, None) + assert result == expected + assert new_index.equals(index.droplevel(0)) + + @pytest.mark.parametrize("dtype1", [int, float, bool, str]) + @pytest.mark.parametrize("dtype2", [int, float, bool, str]) + def test_get_loc_multiple_dtypes(self, dtype1, dtype2): + # GH 18520 + levels = [np.array([0, 1]).astype(dtype1), np.array([0, 1]).astype(dtype2)] + idx = MultiIndex.from_product(levels) + assert idx.get_loc(idx[2]) == 2 + + @pytest.mark.parametrize("level", [0, 1]) + @pytest.mark.parametrize("dtypes", [[int, float], [float, int]]) + def test_get_loc_implicit_cast(self, level, dtypes): + # GH 18818, GH 15994 : as flat index, cast int to float and vice-versa + levels = [["a", "b"], ["c", "d"]] + key = ["b", "d"] + lev_dtype, key_dtype = dtypes + levels[level] = np.array([0, 1], dtype=lev_dtype) + key[level] = key_dtype(1) + idx = MultiIndex.from_product(levels) + assert idx.get_loc(tuple(key)) == 3 + + @pytest.mark.parametrize("dtype", [bool, object]) + def test_get_loc_cast_bool(self, dtype): + # GH 19086 : int is casted to bool, but not vice-versa (for object dtype) + # With bool dtype, we don't cast in either direction. + levels = [Index([False, True], dtype=dtype), np.arange(2, dtype="int64")] + idx = MultiIndex.from_product(levels) + + if dtype is bool: + with pytest.raises(KeyError, match=r"^\(0, 1\)$"): + assert idx.get_loc((0, 1)) == 1 + with pytest.raises(KeyError, match=r"^\(1, 0\)$"): + assert idx.get_loc((1, 0)) == 2 + else: + # We use python object comparisons, which treat 0 == False and 1 == True + assert idx.get_loc((0, 1)) == 1 + assert idx.get_loc((1, 0)) == 2 + + with pytest.raises(KeyError, match=r"^\(False, True\)$"): + idx.get_loc((False, True)) + with pytest.raises(KeyError, match=r"^\(True, False\)$"): + idx.get_loc((True, False)) + + @pytest.mark.parametrize("level", [0, 1]) + def test_get_loc_nan(self, level, nulls_fixture): + # GH 18485 : NaN in MultiIndex + levels = [["a", "b"], ["c", "d"]] + key = ["b", "d"] + levels[level] = np.array([0, nulls_fixture], dtype=type(nulls_fixture)) + key[level] = nulls_fixture + idx = MultiIndex.from_product(levels) + assert idx.get_loc(tuple(key)) == 3 + + def test_get_loc_missing_nan(self): + # GH 8569 + idx = MultiIndex.from_arrays([[1.0, 2.0], [3.0, 4.0]]) + assert isinstance(idx.get_loc(1), slice) + with pytest.raises(KeyError, match=r"^3$"): + idx.get_loc(3) + with pytest.raises(KeyError, match=r"^nan$"): + idx.get_loc(np.nan) + with pytest.raises(InvalidIndexError, match=r"\[nan\]"): + # listlike/non-hashable raises TypeError + idx.get_loc([np.nan]) + + def test_get_loc_with_values_including_missing_values(self): + # issue 19132 + idx = MultiIndex.from_product([[np.nan, 1]] * 2) + expected = slice(0, 2, None) + assert idx.get_loc(np.nan) == expected + + idx = MultiIndex.from_arrays([[np.nan, 1, 2, np.nan]]) + expected = np.array([True, False, False, True]) + tm.assert_numpy_array_equal(idx.get_loc(np.nan), expected) + + idx = MultiIndex.from_product([[np.nan, 1]] * 3) + expected = slice(2, 4, None) + assert idx.get_loc((np.nan, 1)) == expected + + def test_get_loc_duplicates2(self): + # TODO: de-duplicate with test_get_loc_duplicates above? + index = MultiIndex( + levels=[["D", "B", "C"], [0, 26, 27, 37, 57, 67, 75, 82]], + codes=[[0, 0, 0, 1, 2, 2, 2, 2, 2, 2], [1, 3, 4, 6, 0, 2, 2, 3, 5, 7]], + names=["tag", "day"], + ) + + assert index.get_loc("D") == slice(0, 3) + + def test_get_loc_past_lexsort_depth(self): + # GH#30053 + idx = MultiIndex( + levels=[["a"], [0, 7], [1]], + codes=[[0, 0], [1, 0], [0, 0]], + names=["x", "y", "z"], + sortorder=0, + ) + key = ("a", 7) + + with tm.assert_produces_warning(PerformanceWarning): + # PerformanceWarning: indexing past lexsort depth may impact performance + result = idx.get_loc(key) + + assert result == slice(0, 1, None) + + def test_multiindex_get_loc_list_raises(self): + # GH#35878 + idx = MultiIndex.from_tuples([("a", 1), ("b", 2)]) + msg = r"\[\]" + with pytest.raises(InvalidIndexError, match=msg): + idx.get_loc([]) + + def test_get_loc_nested_tuple_raises_keyerror(self): + # raise KeyError, not TypeError + mi = MultiIndex.from_product([range(3), range(4), range(5), range(6)]) + key = ((2, 3, 4), "foo") + + with pytest.raises(KeyError, match=re.escape(str(key))): + mi.get_loc(key) + + +class TestWhere: + def test_where(self): + i = MultiIndex.from_tuples([("A", 1), ("A", 2)]) + + msg = r"\.where is not supported for MultiIndex operations" + with pytest.raises(NotImplementedError, match=msg): + i.where(True) + + def test_where_array_like(self, listlike_box): + mi = MultiIndex.from_tuples([("A", 1), ("A", 2)]) + cond = [False, True] + msg = r"\.where is not supported for MultiIndex operations" + with pytest.raises(NotImplementedError, match=msg): + mi.where(listlike_box(cond)) + + +class TestContains: + def test_contains_top_level(self): + midx = MultiIndex.from_product([["A", "B"], [1, 2]]) + assert "A" in midx + assert "A" not in midx._engine + + def test_contains_with_nat(self): + # MI with a NaT + mi = MultiIndex( + levels=[["C"], date_range("2012-01-01", periods=5)], + codes=[[0, 0, 0, 0, 0, 0], [-1, 0, 1, 2, 3, 4]], + names=[None, "B"], + ) + assert ("C", pd.Timestamp("2012-01-01")) in mi + for val in mi.values: + assert val in mi + + def test_contains(self, idx): + assert ("foo", "two") in idx + assert ("bar", "two") not in idx + assert None not in idx + + def test_contains_with_missing_value(self): + # GH#19132 + idx = MultiIndex.from_arrays([[1, np.nan, 2]]) + assert np.nan in idx + + idx = MultiIndex.from_arrays([[1, 2], [np.nan, 3]]) + assert np.nan not in idx + assert (1, np.nan) in idx + + def test_multiindex_contains_dropped(self): + # GH#19027 + # test that dropped MultiIndex levels are not in the MultiIndex + # despite continuing to be in the MultiIndex's levels + idx = MultiIndex.from_product([[1, 2], [3, 4]]) + assert 2 in idx + idx = idx.drop(2) + + # drop implementation keeps 2 in the levels + assert 2 in idx.levels[0] + # but it should no longer be in the index itself + assert 2 not in idx + + # also applies to strings + idx = MultiIndex.from_product([["a", "b"], ["c", "d"]]) + assert "a" in idx + idx = idx.drop("a") + assert "a" in idx.levels[0] + assert "a" not in idx + + def test_contains_td64_level(self): + # GH#24570 + tx = pd.timedelta_range("09:30:00", "16:00:00", freq="30 min") + idx = MultiIndex.from_arrays([tx, np.arange(len(tx))]) + assert tx[0] in idx + assert "element_not_exit" not in idx + assert "0 day 09:30:00" in idx + + def test_large_mi_contains(self, monkeypatch): + # GH#10645 + with monkeypatch.context(): + monkeypatch.setattr(libindex, "_SIZE_CUTOFF", 10) + result = MultiIndex.from_arrays([range(10), range(10)]) + assert (10, 0) not in result + + +def test_timestamp_multiindex_indexer(): + # https://github.com/pandas-dev/pandas/issues/26944 + idx = MultiIndex.from_product( + [ + date_range("2019-01-01T00:15:33", periods=100, freq="h", name="date"), + ["x"], + [3], + ] + ) + df = DataFrame({"foo": np.arange(len(idx))}, idx) + result = df.loc[pd.IndexSlice["2019-1-2":, "x", :], "foo"] + qidx = MultiIndex.from_product( + [ + date_range( + start="2019-01-02T00:15:33", + end="2019-01-05T03:15:33", + freq="h", + name="date", + ), + ["x"], + [3], + ] + ) + should_be = pd.Series(data=np.arange(24, len(qidx) + 24), index=qidx, name="foo") + tm.assert_series_equal(result, should_be) + + +@pytest.mark.parametrize( + "index_arr,expected,target,algo", + [ + ([[np.nan, "a", "b"], ["c", "d", "e"]], 0, np.nan, "left"), + ([[np.nan, "a", "b"], ["c", "d", "e"]], 1, (np.nan, "c"), "right"), + ([["a", "b", "c"], ["d", np.nan, "d"]], 1, ("b", np.nan), "left"), + ], +) +def test_get_slice_bound_with_missing_value(index_arr, expected, target, algo): + # issue 19132 + idx = MultiIndex.from_arrays(index_arr) + result = idx.get_slice_bound(target, side=algo) + assert result == expected + + +@pytest.mark.parametrize( + "index_arr,expected,start_idx,end_idx", + [ + ([[np.nan, 1, 2], [3, 4, 5]], slice(0, 2, None), np.nan, 1), + ([[np.nan, 1, 2], [3, 4, 5]], slice(0, 3, None), np.nan, (2, 5)), + ([[1, 2, 3], [4, np.nan, 5]], slice(1, 3, None), (2, np.nan), 3), + ([[1, 2, 3], [4, np.nan, 5]], slice(1, 3, None), (2, np.nan), (3, 5)), + ], +) +def test_slice_indexer_with_missing_value(index_arr, expected, start_idx, end_idx): + # issue 19132 + idx = MultiIndex.from_arrays(index_arr) + result = idx.slice_indexer(start=start_idx, end=end_idx) + assert result == expected + + +def test_pyint_engine(): + # GH#18519 : when combinations of codes cannot be represented in 64 + # bits, the index underlying the MultiIndex engine works with Python + # integers, rather than uint64. + N = 5 + keys = [ + tuple(arr) + for arr in [ + [0] * 10 * N, + [1] * 10 * N, + [2] * 10 * N, + [np.nan] * N + [2] * 9 * N, + [0] * N + [2] * 9 * N, + [np.nan] * N + [2] * 8 * N + [0] * N, + ] + ] + # Each level contains 4 elements (including NaN), so it is represented + # in 2 bits, for a total of 2*N*10 = 100 > 64 bits. If we were using a + # 64 bit engine and truncating the first levels, the fourth and fifth + # keys would collide; if truncating the last levels, the fifth and + # sixth; if rotating bits rather than shifting, the third and fifth. + + for idx, key_value in enumerate(keys): + index = MultiIndex.from_tuples(keys) + assert index.get_loc(key_value) == idx + + expected = np.arange(idx + 1, dtype=np.intp) + result = index.get_indexer([keys[i] for i in expected]) + tm.assert_numpy_array_equal(result, expected) + + # With missing key: + idces = range(len(keys)) + expected = np.array([-1] + list(idces), dtype=np.intp) + missing = tuple([0, 1] * 5 * N) + result = index.get_indexer([missing] + [keys[i] for i in idces]) + tm.assert_numpy_array_equal(result, expected) + + +@pytest.mark.parametrize( + "keys,expected", + [ + ((slice(None), [5, 4]), [1, 0]), + ((slice(None), [4, 5]), [0, 1]), + (([True, False, True], [4, 6]), [0, 2]), + (([True, False, True], [6, 4]), [0, 2]), + ((2, [4, 5]), [0, 1]), + ((2, [5, 4]), [1, 0]), + (([2], [4, 5]), [0, 1]), + (([2], [5, 4]), [1, 0]), + ], +) +def test_get_locs_reordering(keys, expected): + # GH48384 + idx = MultiIndex.from_arrays( + [ + [2, 2, 1], + [4, 5, 6], + ] + ) + result = idx.get_locs(keys) + expected = np.array(expected, dtype=np.intp) + tm.assert_numpy_array_equal(result, expected) + + +def test_get_indexer_for_multiindex_with_nans(nulls_fixture): + # GH37222 + idx1 = MultiIndex.from_product([["A"], [1.0, 2.0]], names=["id1", "id2"]) + idx2 = MultiIndex.from_product([["A"], [nulls_fixture, 2.0]], names=["id1", "id2"]) + + result = idx2.get_indexer(idx1) + expected = np.array([-1, 1], dtype=np.intp) + tm.assert_numpy_array_equal(result, expected) + + result = idx1.get_indexer(idx2) + expected = np.array([-1, 1], dtype=np.intp) + tm.assert_numpy_array_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_integrity.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_integrity.py new file mode 100644 index 0000000000000000000000000000000000000000..d956747cbc859f40b69e52ea78c85ebce31f3427 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_integrity.py @@ -0,0 +1,289 @@ +import re + +import numpy as np +import pytest + +from pandas._libs import index as libindex + +from pandas.core.dtypes.cast import construct_1d_object_array_from_listlike + +import pandas as pd +from pandas import ( + Index, + IntervalIndex, + MultiIndex, + RangeIndex, +) +import pandas._testing as tm + + +def test_labels_dtypes(): + # GH 8456 + i = MultiIndex.from_tuples([("A", 1), ("A", 2)]) + assert i.codes[0].dtype == "int8" + assert i.codes[1].dtype == "int8" + + i = MultiIndex.from_product([["a"], range(40)]) + assert i.codes[1].dtype == "int8" + i = MultiIndex.from_product([["a"], range(400)]) + assert i.codes[1].dtype == "int16" + i = MultiIndex.from_product([["a"], range(40000)]) + assert i.codes[1].dtype == "int32" + + i = MultiIndex.from_product([["a"], range(1000)]) + assert (i.codes[0] >= 0).all() + assert (i.codes[1] >= 0).all() + + +def test_values_boxed(): + tuples = [ + (1, pd.Timestamp("2000-01-01")), + (2, pd.NaT), + (3, pd.Timestamp("2000-01-03")), + (1, pd.Timestamp("2000-01-04")), + (2, pd.Timestamp("2000-01-02")), + (3, pd.Timestamp("2000-01-03")), + ] + result = MultiIndex.from_tuples(tuples) + expected = construct_1d_object_array_from_listlike(tuples) + tm.assert_numpy_array_equal(result.values, expected) + # Check that code branches for boxed values produce identical results + tm.assert_numpy_array_equal(result.values[:4], result[:4].values) + + +def test_values_multiindex_datetimeindex(): + # Test to ensure we hit the boxing / nobox part of MI.values + ints = np.arange(10**18, 10**18 + 5) + naive = pd.DatetimeIndex(ints) + + aware = pd.DatetimeIndex(ints, tz="US/Central") + + idx = MultiIndex.from_arrays([naive, aware]) + result = idx.values + + outer = pd.DatetimeIndex([x[0] for x in result]) + tm.assert_index_equal(outer, naive) + + inner = pd.DatetimeIndex([x[1] for x in result]) + tm.assert_index_equal(inner, aware) + + # n_lev > n_lab + result = idx[:2].values + + outer = pd.DatetimeIndex([x[0] for x in result]) + tm.assert_index_equal(outer, naive[:2]) + + inner = pd.DatetimeIndex([x[1] for x in result]) + tm.assert_index_equal(inner, aware[:2]) + + +def test_values_multiindex_periodindex(): + # Test to ensure we hit the boxing / nobox part of MI.values + ints = np.arange(2007, 2012) + pidx = pd.PeriodIndex(ints, freq="D") + + idx = MultiIndex.from_arrays([ints, pidx]) + result = idx.values + + outer = Index([x[0] for x in result]) + tm.assert_index_equal(outer, Index(ints, dtype=np.int64)) + + inner = pd.PeriodIndex([x[1] for x in result]) + tm.assert_index_equal(inner, pidx) + + # n_lev > n_lab + result = idx[:2].values + + outer = Index([x[0] for x in result]) + tm.assert_index_equal(outer, Index(ints[:2], dtype=np.int64)) + + inner = pd.PeriodIndex([x[1] for x in result]) + tm.assert_index_equal(inner, pidx[:2]) + + +def test_consistency(): + # need to construct an overflow + major_axis = list(range(70000)) + minor_axis = list(range(10)) + + major_codes = np.arange(70000) + minor_codes = np.repeat(range(10), 7000) + + # the fact that is works means it's consistent + index = MultiIndex( + levels=[major_axis, minor_axis], codes=[major_codes, minor_codes] + ) + + # inconsistent + major_codes = np.array([0, 0, 1, 1, 1, 2, 2, 3, 3]) + minor_codes = np.array([0, 1, 0, 1, 1, 0, 1, 0, 1]) + index = MultiIndex( + levels=[major_axis, minor_axis], codes=[major_codes, minor_codes] + ) + + assert index.is_unique is False + + +@pytest.mark.slow +def test_hash_collisions(monkeypatch): + # non-smoke test that we don't get hash collisions + size_cutoff = 50 + with monkeypatch.context() as m: + m.setattr(libindex, "_SIZE_CUTOFF", size_cutoff) + index = MultiIndex.from_product( + [np.arange(8), np.arange(8)], names=["one", "two"] + ) + result = index.get_indexer(index.values) + tm.assert_numpy_array_equal(result, np.arange(len(index), dtype="intp")) + + for i in [0, 1, len(index) - 2, len(index) - 1]: + result = index.get_loc(index[i]) + assert result == i + + +def test_dims(): + pass + + +def test_take_invalid_kwargs(): + vals = [["A", "B"], [pd.Timestamp("2011-01-01"), pd.Timestamp("2011-01-02")]] + idx = MultiIndex.from_product(vals, names=["str", "dt"]) + indices = [1, 2] + + msg = r"take\(\) got an unexpected keyword argument 'foo'" + with pytest.raises(TypeError, match=msg): + idx.take(indices, foo=2) + + msg = "the 'out' parameter is not supported" + with pytest.raises(ValueError, match=msg): + idx.take(indices, out=indices) + + msg = "the 'mode' parameter is not supported" + with pytest.raises(ValueError, match=msg): + idx.take(indices, mode="clip") + + +def test_isna_behavior(idx): + # should not segfault GH5123 + # NOTE: if MI representation changes, may make sense to allow + # isna(MI) + msg = "isna is not defined for MultiIndex" + with pytest.raises(NotImplementedError, match=msg): + pd.isna(idx) + + +def test_large_multiindex_error(monkeypatch): + # GH12527 + size_cutoff = 50 + with monkeypatch.context() as m: + m.setattr(libindex, "_SIZE_CUTOFF", size_cutoff) + df_below_cutoff = pd.DataFrame( + 1, + index=MultiIndex.from_product([[1, 2], range(size_cutoff - 1)]), + columns=["dest"], + ) + with pytest.raises(KeyError, match=r"^\(-1, 0\)$"): + df_below_cutoff.loc[(-1, 0), "dest"] + with pytest.raises(KeyError, match=r"^\(3, 0\)$"): + df_below_cutoff.loc[(3, 0), "dest"] + df_above_cutoff = pd.DataFrame( + 1, + index=MultiIndex.from_product([[1, 2], range(size_cutoff + 1)]), + columns=["dest"], + ) + with pytest.raises(KeyError, match=r"^\(-1, 0\)$"): + df_above_cutoff.loc[(-1, 0), "dest"] + with pytest.raises(KeyError, match=r"^\(3, 0\)$"): + df_above_cutoff.loc[(3, 0), "dest"] + + +def test_mi_hashtable_populated_attribute_error(monkeypatch): + # GH 18165 + monkeypatch.setattr(libindex, "_SIZE_CUTOFF", 50) + r = range(50) + df = pd.DataFrame({"a": r, "b": r}, index=MultiIndex.from_arrays([r, r])) + + msg = "'Series' object has no attribute 'foo'" + with pytest.raises(AttributeError, match=msg): + df["a"].foo() + + +def test_can_hold_identifiers(idx): + key = idx[0] + assert idx._can_hold_identifiers_and_holds_name(key) is True + + +def test_metadata_immutable(idx): + levels, codes = idx.levels, idx.codes + # shouldn't be able to set at either the top level or base level + mutable_regex = re.compile("does not support mutable operations") + with pytest.raises(TypeError, match=mutable_regex): + levels[0] = levels[0] + with pytest.raises(TypeError, match=mutable_regex): + levels[0][0] = levels[0][0] + # ditto for labels + with pytest.raises(TypeError, match=mutable_regex): + codes[0] = codes[0] + with pytest.raises(ValueError, match="assignment destination is read-only"): + codes[0][0] = codes[0][0] + # and for names + names = idx.names + with pytest.raises(TypeError, match=mutable_regex): + names[0] = names[0] + + +def test_level_setting_resets_attributes(): + ind = MultiIndex.from_arrays([["A", "A", "B", "B", "B"], [1, 2, 1, 2, 3]]) + assert ind.is_monotonic_increasing + ind = ind.set_levels([["A", "B"], [1, 3, 2]]) + # if this fails, probably didn't reset the cache correctly. + assert not ind.is_monotonic_increasing + + +def test_rangeindex_fallback_coercion_bug(): + # GH 12893 + df1 = pd.DataFrame(np.arange(100).reshape((10, 10))) + df2 = pd.DataFrame(np.arange(100).reshape((10, 10))) + df = pd.concat( + {"df1": df1.stack(future_stack=True), "df2": df2.stack(future_stack=True)}, + axis=1, + ) + df.index.names = ["fizz", "buzz"] + + expected = pd.DataFrame( + {"df2": np.arange(100), "df1": np.arange(100)}, + index=MultiIndex.from_product([range(10), range(10)], names=["fizz", "buzz"]), + ) + tm.assert_frame_equal(df, expected, check_like=True) + + result = df.index.get_level_values("fizz") + expected = Index(np.arange(10, dtype=np.int64), name="fizz").repeat(10) + tm.assert_index_equal(result, expected) + + result = df.index.get_level_values("buzz") + expected = Index(np.tile(np.arange(10, dtype=np.int64), 10), name="buzz") + tm.assert_index_equal(result, expected) + + +def test_memory_usage(idx): + result = idx.memory_usage() + if len(idx): + idx.get_loc(idx[0]) + result2 = idx.memory_usage() + result3 = idx.memory_usage(deep=True) + + # RangeIndex, IntervalIndex + # don't have engines + if not isinstance(idx, (RangeIndex, IntervalIndex)): + assert result2 > result + + if idx.inferred_type == "object": + assert result3 > result2 + + else: + # we report 0 for no-length + assert result == 0 + + +def test_nlevels(idx): + assert idx.nlevels == 2 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_isin.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_isin.py new file mode 100644 index 0000000000000000000000000000000000000000..68fdf25359f1bbada24f6a2403d5a04331bee84c --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_isin.py @@ -0,0 +1,103 @@ +import numpy as np +import pytest + +from pandas import MultiIndex +import pandas._testing as tm + + +def test_isin_nan(): + idx = MultiIndex.from_arrays([["foo", "bar"], [1.0, np.nan]]) + tm.assert_numpy_array_equal(idx.isin([("bar", np.nan)]), np.array([False, True])) + tm.assert_numpy_array_equal( + idx.isin([("bar", float("nan"))]), np.array([False, True]) + ) + + +def test_isin_missing(nulls_fixture): + # GH48905 + mi1 = MultiIndex.from_tuples([(1, nulls_fixture)]) + mi2 = MultiIndex.from_tuples([(1, 1), (1, 2)]) + result = mi2.isin(mi1) + expected = np.array([False, False]) + tm.assert_numpy_array_equal(result, expected) + + +def test_isin(): + values = [("foo", 2), ("bar", 3), ("quux", 4)] + + idx = MultiIndex.from_arrays([["qux", "baz", "foo", "bar"], np.arange(4)]) + result = idx.isin(values) + expected = np.array([False, False, True, True]) + tm.assert_numpy_array_equal(result, expected) + + # empty, return dtype bool + idx = MultiIndex.from_arrays([[], []]) + result = idx.isin(values) + assert len(result) == 0 + assert result.dtype == np.bool_ + + +def test_isin_level_kwarg(): + idx = MultiIndex.from_arrays([["qux", "baz", "foo", "bar"], np.arange(4)]) + + vals_0 = ["foo", "bar", "quux"] + vals_1 = [2, 3, 10] + + expected = np.array([False, False, True, True]) + tm.assert_numpy_array_equal(expected, idx.isin(vals_0, level=0)) + tm.assert_numpy_array_equal(expected, idx.isin(vals_0, level=-2)) + + tm.assert_numpy_array_equal(expected, idx.isin(vals_1, level=1)) + tm.assert_numpy_array_equal(expected, idx.isin(vals_1, level=-1)) + + msg = "Too many levels: Index has only 2 levels, not 6" + with pytest.raises(IndexError, match=msg): + idx.isin(vals_0, level=5) + msg = "Too many levels: Index has only 2 levels, -5 is not a valid level number" + with pytest.raises(IndexError, match=msg): + idx.isin(vals_0, level=-5) + + with pytest.raises(KeyError, match=r"'Level 1\.0 not found'"): + idx.isin(vals_0, level=1.0) + with pytest.raises(KeyError, match=r"'Level -1\.0 not found'"): + idx.isin(vals_1, level=-1.0) + with pytest.raises(KeyError, match="'Level A not found'"): + idx.isin(vals_1, level="A") + + idx.names = ["A", "B"] + tm.assert_numpy_array_equal(expected, idx.isin(vals_0, level="A")) + tm.assert_numpy_array_equal(expected, idx.isin(vals_1, level="B")) + + with pytest.raises(KeyError, match="'Level C not found'"): + idx.isin(vals_1, level="C") + + +@pytest.mark.parametrize( + "labels,expected,level", + [ + ([("b", np.nan)], np.array([False, False, True]), None), + ([np.nan, "a"], np.array([True, True, False]), 0), + (["d", np.nan], np.array([False, True, True]), 1), + ], +) +def test_isin_multi_index_with_missing_value(labels, expected, level): + # GH 19132 + midx = MultiIndex.from_arrays([[np.nan, "a", "b"], ["c", "d", np.nan]]) + result = midx.isin(labels, level=level) + tm.assert_numpy_array_equal(result, expected) + + +def test_isin_empty(): + # GH#51599 + midx = MultiIndex.from_arrays([[1, 2], [3, 4]]) + result = midx.isin([]) + expected = np.array([False, False]) + tm.assert_numpy_array_equal(result, expected) + + +def test_isin_generator(): + # GH#52568 + midx = MultiIndex.from_tuples([(1, 2)]) + result = midx.isin(x for x in [(1, 2)]) + expected = np.array([True]) + tm.assert_numpy_array_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_join.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_join.py new file mode 100644 index 0000000000000000000000000000000000000000..edd0feaaa1159ff8340af772d27f2a7af09ceb87 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_join.py @@ -0,0 +1,268 @@ +import numpy as np +import pytest + +from pandas import ( + DataFrame, + Index, + Interval, + MultiIndex, + Series, + StringDtype, +) +import pandas._testing as tm + + +@pytest.mark.parametrize( + "other", [Index(["three", "one", "two"]), Index(["one"]), Index(["one", "three"])] +) +def test_join_level(idx, other, join_type): + join_index, lidx, ridx = other.join( + idx, how=join_type, level="second", return_indexers=True + ) + + exp_level = other.join(idx.levels[1], how=join_type) + assert join_index.levels[0].equals(idx.levels[0]) + assert join_index.levels[1].equals(exp_level) + + # pare down levels + mask = np.array([x[1] in exp_level for x in idx], dtype=bool) + exp_values = idx.values[mask] + tm.assert_numpy_array_equal(join_index.values, exp_values) + + if join_type in ("outer", "inner"): + join_index2, ridx2, lidx2 = idx.join( + other, how=join_type, level="second", return_indexers=True + ) + + assert join_index.equals(join_index2) + tm.assert_numpy_array_equal(lidx, lidx2) + tm.assert_numpy_array_equal(ridx, ridx2) + tm.assert_numpy_array_equal(join_index2.values, exp_values) + + +def test_join_level_corner_case(idx): + # some corner cases + index = Index(["three", "one", "two"]) + result = index.join(idx, level="second") + assert isinstance(result, MultiIndex) + + with pytest.raises(TypeError, match="Join.*MultiIndex.*ambiguous"): + idx.join(idx, level=1) + + +def test_join_self(idx, join_type): + result = idx.join(idx, how=join_type) + expected = idx + if join_type == "outer": + expected = expected.sort_values() + tm.assert_index_equal(result, expected) + + +def test_join_multi(): + # GH 10665 + midx = MultiIndex.from_product([np.arange(4), np.arange(4)], names=["a", "b"]) + idx = Index([1, 2, 5], name="b") + + # inner + jidx, lidx, ridx = midx.join(idx, how="inner", return_indexers=True) + exp_idx = MultiIndex.from_product([np.arange(4), [1, 2]], names=["a", "b"]) + exp_lidx = np.array([1, 2, 5, 6, 9, 10, 13, 14], dtype=np.intp) + exp_ridx = np.array([0, 1, 0, 1, 0, 1, 0, 1], dtype=np.intp) + tm.assert_index_equal(jidx, exp_idx) + tm.assert_numpy_array_equal(lidx, exp_lidx) + tm.assert_numpy_array_equal(ridx, exp_ridx) + # flip + jidx, ridx, lidx = idx.join(midx, how="inner", return_indexers=True) + tm.assert_index_equal(jidx, exp_idx) + tm.assert_numpy_array_equal(lidx, exp_lidx) + tm.assert_numpy_array_equal(ridx, exp_ridx) + + # keep MultiIndex + jidx, lidx, ridx = midx.join(idx, how="left", return_indexers=True) + exp_ridx = np.array( + [-1, 0, 1, -1, -1, 0, 1, -1, -1, 0, 1, -1, -1, 0, 1, -1], dtype=np.intp + ) + tm.assert_index_equal(jidx, midx) + assert lidx is None + tm.assert_numpy_array_equal(ridx, exp_ridx) + # flip + jidx, ridx, lidx = idx.join(midx, how="right", return_indexers=True) + tm.assert_index_equal(jidx, midx) + assert lidx is None + tm.assert_numpy_array_equal(ridx, exp_ridx) + + +def test_join_multi_wrong_order(): + # GH 25760 + # GH 28956 + + midx1 = MultiIndex.from_product([[1, 2], [3, 4]], names=["a", "b"]) + midx2 = MultiIndex.from_product([[1, 2], [3, 4]], names=["b", "a"]) + + join_idx, lidx, ridx = midx1.join(midx2, return_indexers=True) + + exp_ridx = np.array([-1, -1, -1, -1], dtype=np.intp) + + tm.assert_index_equal(midx1, join_idx) + assert lidx is None + tm.assert_numpy_array_equal(ridx, exp_ridx) + + +def test_join_multi_return_indexers(): + # GH 34074 + + midx1 = MultiIndex.from_product([[1, 2], [3, 4], [5, 6]], names=["a", "b", "c"]) + midx2 = MultiIndex.from_product([[1, 2], [3, 4]], names=["a", "b"]) + + result = midx1.join(midx2, return_indexers=False) + tm.assert_index_equal(result, midx1) + + +def test_join_overlapping_interval_level(): + # GH 44096 + idx_1 = MultiIndex.from_tuples( + [ + (1, Interval(0.0, 1.0)), + (1, Interval(1.0, 2.0)), + (1, Interval(2.0, 5.0)), + (2, Interval(0.0, 1.0)), + (2, Interval(1.0, 3.0)), # interval limit is here at 3.0, not at 2.0 + (2, Interval(3.0, 5.0)), + ], + names=["num", "interval"], + ) + + idx_2 = MultiIndex.from_tuples( + [ + (1, Interval(2.0, 5.0)), + (1, Interval(0.0, 1.0)), + (1, Interval(1.0, 2.0)), + (2, Interval(3.0, 5.0)), + (2, Interval(0.0, 1.0)), + (2, Interval(1.0, 3.0)), + ], + names=["num", "interval"], + ) + + expected = MultiIndex.from_tuples( + [ + (1, Interval(0.0, 1.0)), + (1, Interval(1.0, 2.0)), + (1, Interval(2.0, 5.0)), + (2, Interval(0.0, 1.0)), + (2, Interval(1.0, 3.0)), + (2, Interval(3.0, 5.0)), + ], + names=["num", "interval"], + ) + result = idx_1.join(idx_2, how="outer") + + tm.assert_index_equal(result, expected) + + +def test_join_midx_ea(): + # GH#49277 + midx = MultiIndex.from_arrays( + [Series([1, 1, 3], dtype="Int64"), Series([1, 2, 3], dtype="Int64")], + names=["a", "b"], + ) + midx2 = MultiIndex.from_arrays( + [Series([1], dtype="Int64"), Series([3], dtype="Int64")], names=["a", "c"] + ) + result = midx.join(midx2, how="inner") + expected = MultiIndex.from_arrays( + [ + Series([1, 1], dtype="Int64"), + Series([1, 2], dtype="Int64"), + Series([3, 3], dtype="Int64"), + ], + names=["a", "b", "c"], + ) + tm.assert_index_equal(result, expected) + + +def test_join_midx_string(): + # GH#49277 + midx = MultiIndex.from_arrays( + [ + Series(["a", "a", "c"], dtype=StringDtype()), + Series(["a", "b", "c"], dtype=StringDtype()), + ], + names=["a", "b"], + ) + midx2 = MultiIndex.from_arrays( + [Series(["a"], dtype=StringDtype()), Series(["c"], dtype=StringDtype())], + names=["a", "c"], + ) + result = midx.join(midx2, how="inner") + expected = MultiIndex.from_arrays( + [ + Series(["a", "a"], dtype=StringDtype()), + Series(["a", "b"], dtype=StringDtype()), + Series(["c", "c"], dtype=StringDtype()), + ], + names=["a", "b", "c"], + ) + tm.assert_index_equal(result, expected) + + +def test_join_multi_with_nan(): + # GH29252 + df1 = DataFrame( + data={"col1": [1.1, 1.2]}, + index=MultiIndex.from_product([["A"], [1.0, 2.0]], names=["id1", "id2"]), + ) + df2 = DataFrame( + data={"col2": [2.1, 2.2]}, + index=MultiIndex.from_product([["A"], [np.nan, 2.0]], names=["id1", "id2"]), + ) + result = df1.join(df2) + expected = DataFrame( + data={"col1": [1.1, 1.2], "col2": [np.nan, 2.2]}, + index=MultiIndex.from_product([["A"], [1.0, 2.0]], names=["id1", "id2"]), + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("val", [0, 5]) +def test_join_dtypes(any_numeric_ea_dtype, val): + # GH#49830 + midx = MultiIndex.from_arrays([Series([1, 2], dtype=any_numeric_ea_dtype), [3, 4]]) + midx2 = MultiIndex.from_arrays( + [Series([1, val, val], dtype=any_numeric_ea_dtype), [3, 4, 4]] + ) + result = midx.join(midx2, how="outer") + expected = MultiIndex.from_arrays( + [Series([val, val, 1, 2], dtype=any_numeric_ea_dtype), [4, 4, 3, 4]] + ).sort_values() + tm.assert_index_equal(result, expected) + + +def test_join_dtypes_all_nan(any_numeric_ea_dtype): + # GH#49830 + midx = MultiIndex.from_arrays( + [Series([1, 2], dtype=any_numeric_ea_dtype), [np.nan, np.nan]] + ) + midx2 = MultiIndex.from_arrays( + [Series([1, 0, 0], dtype=any_numeric_ea_dtype), [np.nan, np.nan, np.nan]] + ) + result = midx.join(midx2, how="outer") + expected = MultiIndex.from_arrays( + [ + Series([0, 0, 1, 2], dtype=any_numeric_ea_dtype), + [np.nan, np.nan, np.nan, np.nan], + ] + ) + tm.assert_index_equal(result, expected) + + +def test_join_index_levels(): + # GH#53093 + midx = midx = MultiIndex.from_tuples([("a", "2019-02-01"), ("a", "2019-02-01")]) + midx2 = MultiIndex.from_tuples([("a", "2019-01-31")]) + result = midx.join(midx2, how="outer") + expected = MultiIndex.from_tuples( + [("a", "2019-01-31"), ("a", "2019-02-01"), ("a", "2019-02-01")] + ) + tm.assert_index_equal(result.levels[1], expected.levels[1]) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_lexsort.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_lexsort.py new file mode 100644 index 0000000000000000000000000000000000000000..fc16a4197a3a4daf65de6f58d85d13883d535d41 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_lexsort.py @@ -0,0 +1,46 @@ +from pandas import MultiIndex + + +class TestIsLexsorted: + def test_is_lexsorted(self): + levels = [[0, 1], [0, 1, 2]] + + index = MultiIndex( + levels=levels, codes=[[0, 0, 0, 1, 1, 1], [0, 1, 2, 0, 1, 2]] + ) + assert index._is_lexsorted() + + index = MultiIndex( + levels=levels, codes=[[0, 0, 0, 1, 1, 1], [0, 1, 2, 0, 2, 1]] + ) + assert not index._is_lexsorted() + + index = MultiIndex( + levels=levels, codes=[[0, 0, 1, 0, 1, 1], [0, 1, 0, 2, 2, 1]] + ) + assert not index._is_lexsorted() + assert index._lexsort_depth == 0 + + +class TestLexsortDepth: + def test_lexsort_depth(self): + # Test that lexsort_depth return the correct sortorder + # when it was given to the MultiIndex const. + # GH#28518 + + levels = [[0, 1], [0, 1, 2]] + + index = MultiIndex( + levels=levels, codes=[[0, 0, 0, 1, 1, 1], [0, 1, 2, 0, 1, 2]], sortorder=2 + ) + assert index._lexsort_depth == 2 + + index = MultiIndex( + levels=levels, codes=[[0, 0, 0, 1, 1, 1], [0, 1, 2, 0, 2, 1]], sortorder=1 + ) + assert index._lexsort_depth == 1 + + index = MultiIndex( + levels=levels, codes=[[0, 0, 1, 0, 1, 1], [0, 1, 0, 2, 2, 1]], sortorder=0 + ) + assert index._lexsort_depth == 0 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_missing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_missing.py new file mode 100644 index 0000000000000000000000000000000000000000..14ffc42fb4b59074c3c830a83ff6bdc36bdf099e --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_missing.py @@ -0,0 +1,111 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import MultiIndex +import pandas._testing as tm + + +def test_fillna(idx): + # GH 11343 + msg = "isna is not defined for MultiIndex" + with pytest.raises(NotImplementedError, match=msg): + idx.fillna(idx[0]) + + +def test_dropna(): + # GH 6194 + idx = MultiIndex.from_arrays( + [ + [1, np.nan, 3, np.nan, 5], + [1, 2, np.nan, np.nan, 5], + ["a", "b", "c", np.nan, "e"], + ] + ) + + exp = MultiIndex.from_arrays([[1, 5], [1, 5], ["a", "e"]]) + tm.assert_index_equal(idx.dropna(), exp) + tm.assert_index_equal(idx.dropna(how="any"), exp) + + exp = MultiIndex.from_arrays( + [[1, np.nan, 3, 5], [1, 2, np.nan, 5], ["a", "b", "c", "e"]] + ) + tm.assert_index_equal(idx.dropna(how="all"), exp) + + msg = "invalid how option: xxx" + with pytest.raises(ValueError, match=msg): + idx.dropna(how="xxx") + + # GH26408 + # test if missing values are dropped for multiindex constructed + # from codes and values + idx = MultiIndex( + levels=[[np.nan, None, pd.NaT, "128", 2], [np.nan, None, pd.NaT, "128", 2]], + codes=[[0, -1, 1, 2, 3, 4], [0, -1, 3, 3, 3, 4]], + ) + expected = MultiIndex.from_arrays([["128", 2], ["128", 2]]) + tm.assert_index_equal(idx.dropna(), expected) + tm.assert_index_equal(idx.dropna(how="any"), expected) + + expected = MultiIndex.from_arrays( + [[np.nan, np.nan, "128", 2], ["128", "128", "128", 2]] + ) + tm.assert_index_equal(idx.dropna(how="all"), expected) + + +def test_nulls(idx): + # this is really a smoke test for the methods + # as these are adequately tested for function elsewhere + + msg = "isna is not defined for MultiIndex" + with pytest.raises(NotImplementedError, match=msg): + idx.isna() + + +@pytest.mark.xfail(reason="isna is not defined for MultiIndex") +def test_hasnans_isnans(idx): + # GH 11343, added tests for hasnans / isnans + index = idx.copy() + + # cases in indices doesn't include NaN + expected = np.array([False] * len(index), dtype=bool) + tm.assert_numpy_array_equal(index._isnan, expected) + assert index.hasnans is False + + index = idx.copy() + values = index.values + values[1] = np.nan + + index = type(idx)(values) + + expected = np.array([False] * len(index), dtype=bool) + expected[1] = True + tm.assert_numpy_array_equal(index._isnan, expected) + assert index.hasnans is True + + +def test_nan_stays_float(): + # GH 7031 + idx0 = MultiIndex(levels=[["A", "B"], []], codes=[[1, 0], [-1, -1]], names=[0, 1]) + idx1 = MultiIndex(levels=[["C"], ["D"]], codes=[[0], [0]], names=[0, 1]) + idxm = idx0.join(idx1, how="outer") + assert pd.isna(idx0.get_level_values(1)).all() + # the following failed in 0.14.1 + assert pd.isna(idxm.get_level_values(1)[:-1]).all() + + df0 = pd.DataFrame([[1, 2]], index=idx0) + df1 = pd.DataFrame([[3, 4]], index=idx1) + dfm = df0 - df1 + assert pd.isna(df0.index.get_level_values(1)).all() + # the following failed in 0.14.1 + assert pd.isna(dfm.index.get_level_values(1)[:-1]).all() + + +def test_tuples_have_na(): + index = MultiIndex( + levels=[[1, 0], [0, 1, 2, 3]], + codes=[[1, 1, 1, 1, -1, 0, 0, 0], [0, 1, 2, 3, 0, 1, 2, 3]], + ) + + assert pd.isna(index[4][0]) + assert pd.isna(index.values[4][0]) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_monotonic.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_monotonic.py new file mode 100644 index 0000000000000000000000000000000000000000..2b0b3f7cb36d72abedc538eda9e6a85eb45067e2 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_monotonic.py @@ -0,0 +1,188 @@ +import numpy as np +import pytest + +from pandas import ( + Index, + MultiIndex, +) + + +def test_is_monotonic_increasing_lexsorted(lexsorted_two_level_string_multiindex): + # string ordering + mi = lexsorted_two_level_string_multiindex + assert mi.is_monotonic_increasing is False + assert Index(mi.values).is_monotonic_increasing is False + assert mi._is_strictly_monotonic_increasing is False + assert Index(mi.values)._is_strictly_monotonic_increasing is False + + +def test_is_monotonic_increasing(): + i = MultiIndex.from_product([np.arange(10), np.arange(10)], names=["one", "two"]) + assert i.is_monotonic_increasing is True + assert i._is_strictly_monotonic_increasing is True + assert Index(i.values).is_monotonic_increasing is True + assert i._is_strictly_monotonic_increasing is True + + i = MultiIndex.from_product( + [np.arange(10, 0, -1), np.arange(10)], names=["one", "two"] + ) + assert i.is_monotonic_increasing is False + assert i._is_strictly_monotonic_increasing is False + assert Index(i.values).is_monotonic_increasing is False + assert Index(i.values)._is_strictly_monotonic_increasing is False + + i = MultiIndex.from_product( + [np.arange(10), np.arange(10, 0, -1)], names=["one", "two"] + ) + assert i.is_monotonic_increasing is False + assert i._is_strictly_monotonic_increasing is False + assert Index(i.values).is_monotonic_increasing is False + assert Index(i.values)._is_strictly_monotonic_increasing is False + + i = MultiIndex.from_product([[1.0, np.nan, 2.0], ["a", "b", "c"]]) + assert i.is_monotonic_increasing is False + assert i._is_strictly_monotonic_increasing is False + assert Index(i.values).is_monotonic_increasing is False + assert Index(i.values)._is_strictly_monotonic_increasing is False + + i = MultiIndex( + levels=[["bar", "baz", "foo", "qux"], ["mom", "next", "zenith"]], + codes=[[0, 0, 0, 1, 1, 2, 2, 3, 3, 3], [0, 1, 2, 0, 1, 1, 2, 0, 1, 2]], + names=["first", "second"], + ) + assert i.is_monotonic_increasing is True + assert Index(i.values).is_monotonic_increasing is True + assert i._is_strictly_monotonic_increasing is True + assert Index(i.values)._is_strictly_monotonic_increasing is True + + # mixed levels, hits the TypeError + i = MultiIndex( + levels=[ + [1, 2, 3, 4], + [ + "gb00b03mlx29", + "lu0197800237", + "nl0000289783", + "nl0000289965", + "nl0000301109", + ], + ], + codes=[[0, 1, 1, 2, 2, 2, 3], [4, 2, 0, 0, 1, 3, -1]], + names=["household_id", "asset_id"], + ) + + assert i.is_monotonic_increasing is False + assert i._is_strictly_monotonic_increasing is False + + # empty + i = MultiIndex.from_arrays([[], []]) + assert i.is_monotonic_increasing is True + assert Index(i.values).is_monotonic_increasing is True + assert i._is_strictly_monotonic_increasing is True + assert Index(i.values)._is_strictly_monotonic_increasing is True + + +def test_is_monotonic_decreasing(): + i = MultiIndex.from_product( + [np.arange(9, -1, -1), np.arange(9, -1, -1)], names=["one", "two"] + ) + assert i.is_monotonic_decreasing is True + assert i._is_strictly_monotonic_decreasing is True + assert Index(i.values).is_monotonic_decreasing is True + assert i._is_strictly_monotonic_decreasing is True + + i = MultiIndex.from_product( + [np.arange(10), np.arange(10, 0, -1)], names=["one", "two"] + ) + assert i.is_monotonic_decreasing is False + assert i._is_strictly_monotonic_decreasing is False + assert Index(i.values).is_monotonic_decreasing is False + assert Index(i.values)._is_strictly_monotonic_decreasing is False + + i = MultiIndex.from_product( + [np.arange(10, 0, -1), np.arange(10)], names=["one", "two"] + ) + assert i.is_monotonic_decreasing is False + assert i._is_strictly_monotonic_decreasing is False + assert Index(i.values).is_monotonic_decreasing is False + assert Index(i.values)._is_strictly_monotonic_decreasing is False + + i = MultiIndex.from_product([[2.0, np.nan, 1.0], ["c", "b", "a"]]) + assert i.is_monotonic_decreasing is False + assert i._is_strictly_monotonic_decreasing is False + assert Index(i.values).is_monotonic_decreasing is False + assert Index(i.values)._is_strictly_monotonic_decreasing is False + + # string ordering + i = MultiIndex( + levels=[["qux", "foo", "baz", "bar"], ["three", "two", "one"]], + codes=[[0, 0, 0, 1, 1, 2, 2, 3, 3, 3], [0, 1, 2, 0, 1, 1, 2, 0, 1, 2]], + names=["first", "second"], + ) + assert i.is_monotonic_decreasing is False + assert Index(i.values).is_monotonic_decreasing is False + assert i._is_strictly_monotonic_decreasing is False + assert Index(i.values)._is_strictly_monotonic_decreasing is False + + i = MultiIndex( + levels=[["qux", "foo", "baz", "bar"], ["zenith", "next", "mom"]], + codes=[[0, 0, 0, 1, 1, 2, 2, 3, 3, 3], [0, 1, 2, 0, 1, 1, 2, 0, 1, 2]], + names=["first", "second"], + ) + assert i.is_monotonic_decreasing is True + assert Index(i.values).is_monotonic_decreasing is True + assert i._is_strictly_monotonic_decreasing is True + assert Index(i.values)._is_strictly_monotonic_decreasing is True + + # mixed levels, hits the TypeError + i = MultiIndex( + levels=[ + [4, 3, 2, 1], + [ + "nl0000301109", + "nl0000289965", + "nl0000289783", + "lu0197800237", + "gb00b03mlx29", + ], + ], + codes=[[0, 1, 1, 2, 2, 2, 3], [4, 2, 0, 0, 1, 3, -1]], + names=["household_id", "asset_id"], + ) + + assert i.is_monotonic_decreasing is False + assert i._is_strictly_monotonic_decreasing is False + + # empty + i = MultiIndex.from_arrays([[], []]) + assert i.is_monotonic_decreasing is True + assert Index(i.values).is_monotonic_decreasing is True + assert i._is_strictly_monotonic_decreasing is True + assert Index(i.values)._is_strictly_monotonic_decreasing is True + + +def test_is_strictly_monotonic_increasing(): + idx = MultiIndex( + levels=[["bar", "baz"], ["mom", "next"]], codes=[[0, 0, 1, 1], [0, 0, 0, 1]] + ) + assert idx.is_monotonic_increasing is True + assert idx._is_strictly_monotonic_increasing is False + + +def test_is_strictly_monotonic_decreasing(): + idx = MultiIndex( + levels=[["baz", "bar"], ["next", "mom"]], codes=[[0, 0, 1, 1], [0, 0, 0, 1]] + ) + assert idx.is_monotonic_decreasing is True + assert idx._is_strictly_monotonic_decreasing is False + + +@pytest.mark.parametrize("attr", ["is_monotonic_increasing", "is_monotonic_decreasing"]) +@pytest.mark.parametrize( + "values", + [[(np.nan,), (1,), (2,)], [(1,), (np.nan,), (2,)], [(1,), (2,), (np.nan,)]], +) +def test_is_monotonic_with_nans(values, attr): + # GH: 37220 + idx = MultiIndex.from_tuples(values, names=["test"]) + assert getattr(idx, attr) is False diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_names.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_names.py new file mode 100644 index 0000000000000000000000000000000000000000..45f19b4d70fb95cb2aee459a54d2ad53790b7df8 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_names.py @@ -0,0 +1,201 @@ +import pytest + +import pandas as pd +from pandas import MultiIndex +import pandas._testing as tm + + +def check_level_names(index, names): + assert [level.name for level in index.levels] == list(names) + + +def test_slice_keep_name(): + x = MultiIndex.from_tuples([("a", "b"), (1, 2), ("c", "d")], names=["x", "y"]) + assert x[1:].names == x.names + + +def test_index_name_retained(): + # GH9857 + result = pd.DataFrame({"x": [1, 2, 6], "y": [2, 2, 8], "z": [-5, 0, 5]}) + result = result.set_index("z") + result.loc[10] = [9, 10] + df_expected = pd.DataFrame( + {"x": [1, 2, 6, 9], "y": [2, 2, 8, 10], "z": [-5, 0, 5, 10]} + ) + df_expected = df_expected.set_index("z") + tm.assert_frame_equal(result, df_expected) + + +def test_changing_names(idx): + assert [level.name for level in idx.levels] == ["first", "second"] + + view = idx.view() + copy = idx.copy() + shallow_copy = idx._view() + + # changing names should not change level names on object + new_names = [name + "a" for name in idx.names] + idx.names = new_names + check_level_names(idx, ["firsta", "seconda"]) + + # and not on copies + check_level_names(view, ["first", "second"]) + check_level_names(copy, ["first", "second"]) + check_level_names(shallow_copy, ["first", "second"]) + + # and copies shouldn't change original + shallow_copy.names = [name + "c" for name in shallow_copy.names] + check_level_names(idx, ["firsta", "seconda"]) + + +def test_take_preserve_name(idx): + taken = idx.take([3, 0, 1]) + assert taken.names == idx.names + + +def test_copy_names(): + # Check that adding a "names" parameter to the copy is honored + # GH14302 + multi_idx = MultiIndex.from_tuples([(1, 2), (3, 4)], names=["MyName1", "MyName2"]) + multi_idx1 = multi_idx.copy() + + assert multi_idx.equals(multi_idx1) + assert multi_idx.names == ["MyName1", "MyName2"] + assert multi_idx1.names == ["MyName1", "MyName2"] + + multi_idx2 = multi_idx.copy(names=["NewName1", "NewName2"]) + + assert multi_idx.equals(multi_idx2) + assert multi_idx.names == ["MyName1", "MyName2"] + assert multi_idx2.names == ["NewName1", "NewName2"] + + multi_idx3 = multi_idx.copy(name=["NewName1", "NewName2"]) + + assert multi_idx.equals(multi_idx3) + assert multi_idx.names == ["MyName1", "MyName2"] + assert multi_idx3.names == ["NewName1", "NewName2"] + + # gh-35592 + with pytest.raises(ValueError, match="Length of new names must be 2, got 1"): + multi_idx.copy(names=["mario"]) + + with pytest.raises(TypeError, match="MultiIndex.name must be a hashable type"): + multi_idx.copy(names=[["mario"], ["luigi"]]) + + +def test_names(idx): + # names are assigned in setup + assert idx.names == ["first", "second"] + level_names = [level.name for level in idx.levels] + assert level_names == idx.names + + # setting bad names on existing + index = idx + with pytest.raises(ValueError, match="^Length of names"): + setattr(index, "names", list(index.names) + ["third"]) + with pytest.raises(ValueError, match="^Length of names"): + setattr(index, "names", []) + + # initializing with bad names (should always be equivalent) + major_axis, minor_axis = idx.levels + major_codes, minor_codes = idx.codes + with pytest.raises(ValueError, match="^Length of names"): + MultiIndex( + levels=[major_axis, minor_axis], + codes=[major_codes, minor_codes], + names=["first"], + ) + with pytest.raises(ValueError, match="^Length of names"): + MultiIndex( + levels=[major_axis, minor_axis], + codes=[major_codes, minor_codes], + names=["first", "second", "third"], + ) + + # names are assigned on index, but not transferred to the levels + index.names = ["a", "b"] + level_names = [level.name for level in index.levels] + assert level_names == ["a", "b"] + + +def test_duplicate_level_names_access_raises(idx): + # GH19029 + idx.names = ["foo", "foo"] + with pytest.raises(ValueError, match="name foo occurs multiple times"): + idx._get_level_number("foo") + + +def test_get_names_from_levels(): + idx = MultiIndex.from_product([["a"], [1, 2]], names=["a", "b"]) + + assert idx.levels[0].name == "a" + assert idx.levels[1].name == "b" + + +def test_setting_names_from_levels_raises(): + idx = MultiIndex.from_product([["a"], [1, 2]], names=["a", "b"]) + with pytest.raises(RuntimeError, match="set_names"): + idx.levels[0].name = "foo" + + with pytest.raises(RuntimeError, match="set_names"): + idx.levels[1].name = "foo" + + new = pd.Series(1, index=idx.levels[0]) + with pytest.raises(RuntimeError, match="set_names"): + new.index.name = "bar" + + assert pd.Index._no_setting_name is False + assert pd.RangeIndex._no_setting_name is False + + +@pytest.mark.parametrize("func", ["rename", "set_names"]) +@pytest.mark.parametrize( + "rename_dict, exp_names", + [ + ({"x": "z"}, ["z", "y", "z"]), + ({"x": "z", "y": "x"}, ["z", "x", "z"]), + ({"y": "z"}, ["x", "z", "x"]), + ({}, ["x", "y", "x"]), + ({"z": "a"}, ["x", "y", "x"]), + ({"y": "z", "a": "b"}, ["x", "z", "x"]), + ], +) +def test_name_mi_with_dict_like_duplicate_names(func, rename_dict, exp_names): + # GH#20421 + mi = MultiIndex.from_arrays([[1, 2], [3, 4], [5, 6]], names=["x", "y", "x"]) + result = getattr(mi, func)(rename_dict) + expected = MultiIndex.from_arrays([[1, 2], [3, 4], [5, 6]], names=exp_names) + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize("func", ["rename", "set_names"]) +@pytest.mark.parametrize( + "rename_dict, exp_names", + [ + ({"x": "z"}, ["z", "y"]), + ({"x": "z", "y": "x"}, ["z", "x"]), + ({"a": "z"}, ["x", "y"]), + ({}, ["x", "y"]), + ], +) +def test_name_mi_with_dict_like(func, rename_dict, exp_names): + # GH#20421 + mi = MultiIndex.from_arrays([[1, 2], [3, 4]], names=["x", "y"]) + result = getattr(mi, func)(rename_dict) + expected = MultiIndex.from_arrays([[1, 2], [3, 4]], names=exp_names) + tm.assert_index_equal(result, expected) + + +def test_index_name_with_dict_like_raising(): + # GH#20421 + ix = pd.Index([1, 2]) + msg = "Can only pass dict-like as `names` for MultiIndex." + with pytest.raises(TypeError, match=msg): + ix.set_names({"x": "z"}) + + +def test_multiindex_name_and_level_raising(): + # GH#20421 + mi = MultiIndex.from_arrays([[1, 2], [3, 4]], names=["x", "y"]) + with pytest.raises(TypeError, match="Can not pass level for dictlike `names`."): + mi.set_names(names={"x": "z"}, level={"x": "z"}) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_partial_indexing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_partial_indexing.py new file mode 100644 index 0000000000000000000000000000000000000000..64cc1fa621b3195727cbfb3e62a8b6a6acf4dfaf --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_partial_indexing.py @@ -0,0 +1,148 @@ +import numpy as np +import pytest + +from pandas import ( + DataFrame, + IndexSlice, + MultiIndex, + date_range, +) +import pandas._testing as tm + + +@pytest.fixture +def df(): + # c1 + # 2016-01-01 00:00:00 a 0 + # b 1 + # c 2 + # 2016-01-01 12:00:00 a 3 + # b 4 + # c 5 + # 2016-01-02 00:00:00 a 6 + # b 7 + # c 8 + # 2016-01-02 12:00:00 a 9 + # b 10 + # c 11 + # 2016-01-03 00:00:00 a 12 + # b 13 + # c 14 + dr = date_range("2016-01-01", "2016-01-03", freq="12h") + abc = ["a", "b", "c"] + mi = MultiIndex.from_product([dr, abc]) + frame = DataFrame({"c1": range(15)}, index=mi) + return frame + + +def test_partial_string_matching_single_index(df): + # partial string matching on a single index + for df_swap in [df.swaplevel(), df.swaplevel(0), df.swaplevel(0, 1)]: + df_swap = df_swap.sort_index() + just_a = df_swap.loc["a"] + result = just_a.loc["2016-01-01"] + expected = df.loc[IndexSlice[:, "a"], :].iloc[0:2] + expected.index = expected.index.droplevel(1) + tm.assert_frame_equal(result, expected) + + +def test_get_loc_partial_timestamp_multiindex(df): + mi = df.index + key = ("2016-01-01", "a") + loc = mi.get_loc(key) + + expected = np.zeros(len(mi), dtype=bool) + expected[[0, 3]] = True + tm.assert_numpy_array_equal(loc, expected) + + key2 = ("2016-01-02", "a") + loc2 = mi.get_loc(key2) + expected2 = np.zeros(len(mi), dtype=bool) + expected2[[6, 9]] = True + tm.assert_numpy_array_equal(loc2, expected2) + + key3 = ("2016-01", "a") + loc3 = mi.get_loc(key3) + expected3 = np.zeros(len(mi), dtype=bool) + expected3[mi.get_level_values(1).get_loc("a")] = True + tm.assert_numpy_array_equal(loc3, expected3) + + key4 = ("2016", "a") + loc4 = mi.get_loc(key4) + expected4 = expected3 + tm.assert_numpy_array_equal(loc4, expected4) + + # non-monotonic + taker = np.arange(len(mi), dtype=np.intp) + taker[::2] = taker[::-2] + mi2 = mi.take(taker) + loc5 = mi2.get_loc(key) + expected5 = np.zeros(len(mi2), dtype=bool) + expected5[[3, 14]] = True + tm.assert_numpy_array_equal(loc5, expected5) + + +def test_partial_string_timestamp_multiindex(df): + # GH10331 + df_swap = df.swaplevel(0, 1).sort_index() + SLC = IndexSlice + + # indexing with IndexSlice + result = df.loc[SLC["2016-01-01":"2016-02-01", :], :] + expected = df + tm.assert_frame_equal(result, expected) + + # match on secondary index + result = df_swap.loc[SLC[:, "2016-01-01":"2016-01-01"], :] + expected = df_swap.iloc[[0, 1, 5, 6, 10, 11]] + tm.assert_frame_equal(result, expected) + + # partial string match on year only + result = df.loc["2016"] + expected = df + tm.assert_frame_equal(result, expected) + + # partial string match on date + result = df.loc["2016-01-01"] + expected = df.iloc[0:6] + tm.assert_frame_equal(result, expected) + + # partial string match on date and hour, from middle + result = df.loc["2016-01-02 12"] + # hourly resolution, same as index.levels[0], so we are _not_ slicing on + # that level, so that level gets dropped + expected = df.iloc[9:12].droplevel(0) + tm.assert_frame_equal(result, expected) + + # partial string match on secondary index + result = df_swap.loc[SLC[:, "2016-01-02"], :] + expected = df_swap.iloc[[2, 3, 7, 8, 12, 13]] + tm.assert_frame_equal(result, expected) + + # tuple selector with partial string match on date + # "2016-01-01" has daily resolution, so _is_ a slice on the first level. + result = df.loc[("2016-01-01", "a"), :] + expected = df.iloc[[0, 3]] + expected = df.iloc[[0, 3]].droplevel(1) + tm.assert_frame_equal(result, expected) + + # Slicing date on first level should break (of course) bc the DTI is the + # second level on df_swap + with pytest.raises(KeyError, match="'2016-01-01'"): + df_swap.loc["2016-01-01"] + + +def test_partial_string_timestamp_multiindex_str_key_raises(df): + # Even though this syntax works on a single index, this is somewhat + # ambiguous and we don't want to extend this behavior forward to work + # in multi-indexes. This would amount to selecting a scalar from a + # column. + with pytest.raises(KeyError, match="'2016-01-01'"): + df["2016-01-01"] + + +def test_partial_string_timestamp_multiindex_daily_resolution(df): + # GH12685 (partial string with daily resolution or below) + result = df.loc[IndexSlice["2013-03":"2013-03", :], :] + expected = df.iloc[118:180] + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_pickle.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_pickle.py new file mode 100644 index 0000000000000000000000000000000000000000..1d8b72140442159fa0b8c608022d167bddd95db4 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_pickle.py @@ -0,0 +1,10 @@ +import pytest + +from pandas import MultiIndex + + +def test_pickle_compat_construction(): + # this is testing for pickle compat + # need an object to create with + with pytest.raises(TypeError, match="Must pass both levels and codes"): + MultiIndex() diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_reindex.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_reindex.py new file mode 100644 index 0000000000000000000000000000000000000000..d1b4fe8b98760a0b776c5d81d471a7745e8407de --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_reindex.py @@ -0,0 +1,174 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + Index, + MultiIndex, +) +import pandas._testing as tm + + +def test_reindex(idx): + result, indexer = idx.reindex(list(idx[:4])) + assert isinstance(result, MultiIndex) + assert result.names == ["first", "second"] + assert [level.name for level in result.levels] == ["first", "second"] + + result, indexer = idx.reindex(list(idx)) + assert isinstance(result, MultiIndex) + assert indexer is None + assert result.names == ["first", "second"] + assert [level.name for level in result.levels] == ["first", "second"] + + +def test_reindex_level(idx): + index = Index(["one"]) + + target, indexer = idx.reindex(index, level="second") + target2, indexer2 = index.reindex(idx, level="second") + + exp_index = idx.join(index, level="second", how="right") + exp_index2 = idx.join(index, level="second", how="left") + + assert target.equals(exp_index) + exp_indexer = np.array([0, 2, 4]) + tm.assert_numpy_array_equal(indexer, exp_indexer, check_dtype=False) + + assert target2.equals(exp_index2) + exp_indexer2 = np.array([0, -1, 0, -1, 0, -1]) + tm.assert_numpy_array_equal(indexer2, exp_indexer2, check_dtype=False) + + with pytest.raises(TypeError, match="Fill method not supported"): + idx.reindex(idx, method="pad", level="second") + + +def test_reindex_preserves_names_when_target_is_list_or_ndarray(idx): + # GH6552 + idx = idx.copy() + target = idx.copy() + idx.names = target.names = [None, None] + + other_dtype = MultiIndex.from_product([[1, 2], [3, 4]]) + + # list & ndarray cases + assert idx.reindex([])[0].names == [None, None] + assert idx.reindex(np.array([]))[0].names == [None, None] + assert idx.reindex(target.tolist())[0].names == [None, None] + assert idx.reindex(target.values)[0].names == [None, None] + assert idx.reindex(other_dtype.tolist())[0].names == [None, None] + assert idx.reindex(other_dtype.values)[0].names == [None, None] + + idx.names = ["foo", "bar"] + assert idx.reindex([])[0].names == ["foo", "bar"] + assert idx.reindex(np.array([]))[0].names == ["foo", "bar"] + assert idx.reindex(target.tolist())[0].names == ["foo", "bar"] + assert idx.reindex(target.values)[0].names == ["foo", "bar"] + assert idx.reindex(other_dtype.tolist())[0].names == ["foo", "bar"] + assert idx.reindex(other_dtype.values)[0].names == ["foo", "bar"] + + +def test_reindex_lvl_preserves_names_when_target_is_list_or_array(): + # GH7774 + idx = MultiIndex.from_product([[0, 1], ["a", "b"]], names=["foo", "bar"]) + assert idx.reindex([], level=0)[0].names == ["foo", "bar"] + assert idx.reindex([], level=1)[0].names == ["foo", "bar"] + + +def test_reindex_lvl_preserves_type_if_target_is_empty_list_or_array( + using_infer_string, +): + # GH7774 + idx = MultiIndex.from_product([[0, 1], ["a", "b"]]) + assert idx.reindex([], level=0)[0].levels[0].dtype.type == np.int64 + exp = np.object_ if not using_infer_string else str + assert idx.reindex([], level=1)[0].levels[1].dtype.type == exp + + # case with EA levels + cat = pd.Categorical(["foo", "bar"]) + dti = pd.date_range("2016-01-01", periods=2, tz="US/Pacific") + mi = MultiIndex.from_product([cat, dti]) + assert mi.reindex([], level=0)[0].levels[0].dtype == cat.dtype + assert mi.reindex([], level=1)[0].levels[1].dtype == dti.dtype + + +def test_reindex_base(idx): + expected = np.arange(idx.size, dtype=np.intp) + + actual = idx.get_indexer(idx) + tm.assert_numpy_array_equal(expected, actual) + + with pytest.raises(ValueError, match="Invalid fill method"): + idx.get_indexer(idx, method="invalid") + + +def test_reindex_non_unique(): + idx = MultiIndex.from_tuples([(0, 0), (1, 1), (1, 1), (2, 2)]) + a = pd.Series(np.arange(4), index=idx) + new_idx = MultiIndex.from_tuples([(0, 0), (1, 1), (2, 2)]) + + msg = "cannot handle a non-unique multi-index!" + with pytest.raises(ValueError, match=msg): + a.reindex(new_idx) + + +@pytest.mark.parametrize("values", [[["a"], ["x"]], [[], []]]) +def test_reindex_empty_with_level(values): + # GH41170 + idx = MultiIndex.from_arrays(values) + result, result_indexer = idx.reindex(np.array(["b"]), level=0) + expected = MultiIndex(levels=[["b"], values[1]], codes=[[], []]) + expected_indexer = np.array([], dtype=result_indexer.dtype) + tm.assert_index_equal(result, expected) + tm.assert_numpy_array_equal(result_indexer, expected_indexer) + + +def test_reindex_not_all_tuples(): + keys = [("i", "i"), ("i", "j"), ("j", "i"), "j"] + mi = MultiIndex.from_tuples(keys[:-1]) + idx = Index(keys) + res, indexer = mi.reindex(idx) + + tm.assert_index_equal(res, idx) + expected = np.array([0, 1, 2, -1], dtype=np.intp) + tm.assert_numpy_array_equal(indexer, expected) + + +def test_reindex_limit_arg_with_multiindex(): + # GH21247 + + idx = MultiIndex.from_tuples([(3, "A"), (4, "A"), (4, "B")]) + + df = pd.Series([0.02, 0.01, 0.012], index=idx) + + new_idx = MultiIndex.from_tuples( + [ + (3, "A"), + (3, "B"), + (4, "A"), + (4, "B"), + (4, "C"), + (5, "B"), + (5, "C"), + (6, "B"), + (6, "C"), + ] + ) + + with pytest.raises( + ValueError, + match="limit argument only valid if doing pad, backfill or nearest reindexing", + ): + df.reindex(new_idx, fill_value=0, limit=1) + + +def test_reindex_with_none_in_nested_multiindex(): + # GH42883 + index = MultiIndex.from_tuples([(("a", None), 1), (("b", None), 2)]) + index2 = MultiIndex.from_tuples([(("b", None), 2), (("a", None), 1)]) + df1_dtype = pd.DataFrame([1, 2], index=index) + df2_dtype = pd.DataFrame([2, 1], index=index2) + + result = df1_dtype.reindex_like(df2_dtype) + expected = df2_dtype + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_reshape.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_reshape.py new file mode 100644 index 0000000000000000000000000000000000000000..06dbb33aadf97a54e4bb283d3aed8fe1169164b3 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_reshape.py @@ -0,0 +1,224 @@ +from datetime import datetime + +import numpy as np +import pytest +import pytz + +import pandas as pd +from pandas import ( + Index, + MultiIndex, +) +import pandas._testing as tm + + +def test_insert(idx): + # key contained in all levels + new_index = idx.insert(0, ("bar", "two")) + assert new_index.equal_levels(idx) + assert new_index[0] == ("bar", "two") + + # key not contained in all levels + new_index = idx.insert(0, ("abc", "three")) + + exp0 = Index(list(idx.levels[0]) + ["abc"], name="first") + tm.assert_index_equal(new_index.levels[0], exp0) + assert new_index.names == ["first", "second"] + + exp1 = Index(list(idx.levels[1]) + ["three"], name="second") + tm.assert_index_equal(new_index.levels[1], exp1) + assert new_index[0] == ("abc", "three") + + # key wrong length + msg = "Item must have length equal to number of levels" + with pytest.raises(ValueError, match=msg): + idx.insert(0, ("foo2",)) + + left = pd.DataFrame([["a", "b", 0], ["b", "d", 1]], columns=["1st", "2nd", "3rd"]) + left.set_index(["1st", "2nd"], inplace=True) + ts = left["3rd"].copy(deep=True) + + left.loc[("b", "x"), "3rd"] = 2 + left.loc[("b", "a"), "3rd"] = -1 + left.loc[("b", "b"), "3rd"] = 3 + left.loc[("a", "x"), "3rd"] = 4 + left.loc[("a", "w"), "3rd"] = 5 + left.loc[("a", "a"), "3rd"] = 6 + + ts.loc[("b", "x")] = 2 + ts.loc["b", "a"] = -1 + ts.loc[("b", "b")] = 3 + ts.loc["a", "x"] = 4 + ts.loc[("a", "w")] = 5 + ts.loc["a", "a"] = 6 + + right = pd.DataFrame( + [ + ["a", "b", 0], + ["b", "d", 1], + ["b", "x", 2], + ["b", "a", -1], + ["b", "b", 3], + ["a", "x", 4], + ["a", "w", 5], + ["a", "a", 6], + ], + columns=["1st", "2nd", "3rd"], + ) + right.set_index(["1st", "2nd"], inplace=True) + # FIXME data types changes to float because + # of intermediate nan insertion; + tm.assert_frame_equal(left, right, check_dtype=False) + tm.assert_series_equal(ts, right["3rd"]) + + +def test_insert2(): + # GH9250 + idx = ( + [("test1", i) for i in range(5)] + + [("test2", i) for i in range(6)] + + [("test", 17), ("test", 18)] + ) + + left = pd.Series(np.linspace(0, 10, 11), MultiIndex.from_tuples(idx[:-2])) + + left.loc[("test", 17)] = 11 + left.loc[("test", 18)] = 12 + + right = pd.Series(np.linspace(0, 12, 13), MultiIndex.from_tuples(idx)) + + tm.assert_series_equal(left, right) + + +def test_append(idx): + result = idx[:3].append(idx[3:]) + assert result.equals(idx) + + foos = [idx[:1], idx[1:3], idx[3:]] + result = foos[0].append(foos[1:]) + assert result.equals(idx) + + # empty + result = idx.append([]) + assert result.equals(idx) + + +def test_append_index(): + idx1 = Index([1.1, 1.2, 1.3]) + idx2 = pd.date_range("2011-01-01", freq="D", periods=3, tz="Asia/Tokyo") + idx3 = Index(["A", "B", "C"]) + + midx_lv2 = MultiIndex.from_arrays([idx1, idx2]) + midx_lv3 = MultiIndex.from_arrays([idx1, idx2, idx3]) + + result = idx1.append(midx_lv2) + + # see gh-7112 + tz = pytz.timezone("Asia/Tokyo") + expected_tuples = [ + (1.1, tz.localize(datetime(2011, 1, 1))), + (1.2, tz.localize(datetime(2011, 1, 2))), + (1.3, tz.localize(datetime(2011, 1, 3))), + ] + expected = Index([1.1, 1.2, 1.3] + expected_tuples) + tm.assert_index_equal(result, expected) + + result = midx_lv2.append(idx1) + expected = Index(expected_tuples + [1.1, 1.2, 1.3]) + tm.assert_index_equal(result, expected) + + result = midx_lv2.append(midx_lv2) + expected = MultiIndex.from_arrays([idx1.append(idx1), idx2.append(idx2)]) + tm.assert_index_equal(result, expected) + + result = midx_lv2.append(midx_lv3) + tm.assert_index_equal(result, expected) + + result = midx_lv3.append(midx_lv2) + expected = Index._simple_new( + np.array( + [ + (1.1, tz.localize(datetime(2011, 1, 1)), "A"), + (1.2, tz.localize(datetime(2011, 1, 2)), "B"), + (1.3, tz.localize(datetime(2011, 1, 3)), "C"), + ] + + expected_tuples, + dtype=object, + ), + None, + ) + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize("name, exp", [("b", "b"), ("c", None)]) +def test_append_names_match(name, exp): + # GH#48288 + midx = MultiIndex.from_arrays([[1, 2], [3, 4]], names=["a", "b"]) + midx2 = MultiIndex.from_arrays([[3], [5]], names=["a", name]) + result = midx.append(midx2) + expected = MultiIndex.from_arrays([[1, 2, 3], [3, 4, 5]], names=["a", exp]) + tm.assert_index_equal(result, expected) + + +def test_append_names_dont_match(): + # GH#48288 + midx = MultiIndex.from_arrays([[1, 2], [3, 4]], names=["a", "b"]) + midx2 = MultiIndex.from_arrays([[3], [5]], names=["x", "y"]) + result = midx.append(midx2) + expected = MultiIndex.from_arrays([[1, 2, 3], [3, 4, 5]], names=None) + tm.assert_index_equal(result, expected) + + +def test_append_overlapping_interval_levels(): + # GH 54934 + ivl1 = pd.IntervalIndex.from_breaks([0.0, 1.0, 2.0]) + ivl2 = pd.IntervalIndex.from_breaks([0.5, 1.5, 2.5]) + mi1 = MultiIndex.from_product([ivl1, ivl1]) + mi2 = MultiIndex.from_product([ivl2, ivl2]) + result = mi1.append(mi2) + expected = MultiIndex.from_tuples( + [ + (pd.Interval(0.0, 1.0), pd.Interval(0.0, 1.0)), + (pd.Interval(0.0, 1.0), pd.Interval(1.0, 2.0)), + (pd.Interval(1.0, 2.0), pd.Interval(0.0, 1.0)), + (pd.Interval(1.0, 2.0), pd.Interval(1.0, 2.0)), + (pd.Interval(0.5, 1.5), pd.Interval(0.5, 1.5)), + (pd.Interval(0.5, 1.5), pd.Interval(1.5, 2.5)), + (pd.Interval(1.5, 2.5), pd.Interval(0.5, 1.5)), + (pd.Interval(1.5, 2.5), pd.Interval(1.5, 2.5)), + ] + ) + tm.assert_index_equal(result, expected) + + +def test_repeat(): + reps = 2 + numbers = [1, 2, 3] + names = np.array(["foo", "bar"]) + + m = MultiIndex.from_product([numbers, names], names=names) + expected = MultiIndex.from_product([numbers, names.repeat(reps)], names=names) + tm.assert_index_equal(m.repeat(reps), expected) + + +def test_insert_base(idx): + result = idx[1:4] + + # test 0th element + assert idx[0:4].equals(result.insert(0, idx[0])) + + +def test_delete_base(idx): + expected = idx[1:] + result = idx.delete(0) + assert result.equals(expected) + assert result.name == expected.name + + expected = idx[:-1] + result = idx.delete(-1) + assert result.equals(expected) + assert result.name == expected.name + + msg = "index 6 is out of bounds for axis 0 with size 6" + with pytest.raises(IndexError, match=msg): + idx.delete(len(idx)) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_setops.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_setops.py new file mode 100644 index 0000000000000000000000000000000000000000..801a813955b41ed6f67f00996e2de371d20fded5 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_setops.py @@ -0,0 +1,772 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + CategoricalIndex, + DataFrame, + Index, + IntervalIndex, + MultiIndex, + Series, +) +import pandas._testing as tm +from pandas.api.types import ( + is_float_dtype, + is_unsigned_integer_dtype, +) + + +@pytest.mark.parametrize("case", [0.5, "xxx"]) +@pytest.mark.parametrize( + "method", ["intersection", "union", "difference", "symmetric_difference"] +) +def test_set_ops_error_cases(idx, case, sort, method): + # non-iterable input + msg = "Input must be Index or array-like" + with pytest.raises(TypeError, match=msg): + getattr(idx, method)(case, sort=sort) + + +@pytest.mark.parametrize("klass", [MultiIndex, np.array, Series, list]) +def test_intersection_base(idx, sort, klass): + first = idx[2::-1] # first 3 elements reversed + second = idx[:5] + + if klass is not MultiIndex: + second = klass(second.values) + + intersect = first.intersection(second, sort=sort) + if sort is None: + expected = first.sort_values() + else: + expected = first + tm.assert_index_equal(intersect, expected) + + msg = "other must be a MultiIndex or a list of tuples" + with pytest.raises(TypeError, match=msg): + first.intersection([1, 2, 3], sort=sort) + + +@pytest.mark.arm_slow +@pytest.mark.parametrize("klass", [MultiIndex, np.array, Series, list]) +def test_union_base(idx, sort, klass): + first = idx[::-1] + second = idx[:5] + + if klass is not MultiIndex: + second = klass(second.values) + + union = first.union(second, sort=sort) + if sort is None: + expected = first.sort_values() + else: + expected = first + tm.assert_index_equal(union, expected) + + msg = "other must be a MultiIndex or a list of tuples" + with pytest.raises(TypeError, match=msg): + first.union([1, 2, 3], sort=sort) + + +def test_difference_base(idx, sort): + second = idx[4:] + answer = idx[:4] + result = idx.difference(second, sort=sort) + + if sort is None: + answer = answer.sort_values() + + assert result.equals(answer) + tm.assert_index_equal(result, answer) + + # GH 10149 + cases = [klass(second.values) for klass in [np.array, Series, list]] + for case in cases: + result = idx.difference(case, sort=sort) + tm.assert_index_equal(result, answer) + + msg = "other must be a MultiIndex or a list of tuples" + with pytest.raises(TypeError, match=msg): + idx.difference([1, 2, 3], sort=sort) + + +def test_symmetric_difference(idx, sort): + first = idx[1:] + second = idx[:-1] + answer = idx[[-1, 0]] + result = first.symmetric_difference(second, sort=sort) + + if sort is None: + answer = answer.sort_values() + + tm.assert_index_equal(result, answer) + + # GH 10149 + cases = [klass(second.values) for klass in [np.array, Series, list]] + for case in cases: + result = first.symmetric_difference(case, sort=sort) + tm.assert_index_equal(result, answer) + + msg = "other must be a MultiIndex or a list of tuples" + with pytest.raises(TypeError, match=msg): + first.symmetric_difference([1, 2, 3], sort=sort) + + +def test_multiindex_symmetric_difference(): + # GH 13490 + idx = MultiIndex.from_product([["a", "b"], ["A", "B"]], names=["a", "b"]) + result = idx.symmetric_difference(idx) + assert result.names == idx.names + + idx2 = idx.copy().rename(["A", "B"]) + result = idx.symmetric_difference(idx2) + assert result.names == [None, None] + + +def test_empty(idx): + # GH 15270 + assert not idx.empty + assert idx[:0].empty + + +def test_difference(idx, sort): + first = idx + result = first.difference(idx[-3:], sort=sort) + vals = idx[:-3].values + + if sort is None: + vals = sorted(vals) + + expected = MultiIndex.from_tuples(vals, sortorder=0, names=idx.names) + + assert isinstance(result, MultiIndex) + assert result.equals(expected) + assert result.names == idx.names + tm.assert_index_equal(result, expected) + + # empty difference: reflexive + result = idx.difference(idx, sort=sort) + expected = idx[:0] + assert result.equals(expected) + assert result.names == idx.names + + # empty difference: superset + result = idx[-3:].difference(idx, sort=sort) + expected = idx[:0] + assert result.equals(expected) + assert result.names == idx.names + + # empty difference: degenerate + result = idx[:0].difference(idx, sort=sort) + expected = idx[:0] + assert result.equals(expected) + assert result.names == idx.names + + # names not the same + chunklet = idx[-3:] + chunklet.names = ["foo", "baz"] + result = first.difference(chunklet, sort=sort) + assert result.names == (None, None) + + # empty, but non-equal + result = idx.difference(idx.sortlevel(1)[0], sort=sort) + assert len(result) == 0 + + # raise Exception called with non-MultiIndex + result = first.difference(first.values, sort=sort) + assert result.equals(first[:0]) + + # name from empty array + result = first.difference([], sort=sort) + assert first.equals(result) + assert first.names == result.names + + # name from non-empty array + result = first.difference([("foo", "one")], sort=sort) + expected = MultiIndex.from_tuples( + [("bar", "one"), ("baz", "two"), ("foo", "two"), ("qux", "one"), ("qux", "two")] + ) + expected.names = first.names + assert first.names == result.names + + msg = "other must be a MultiIndex or a list of tuples" + with pytest.raises(TypeError, match=msg): + first.difference([1, 2, 3, 4, 5], sort=sort) + + +def test_difference_sort_special(): + # GH-24959 + idx = MultiIndex.from_product([[1, 0], ["a", "b"]]) + # sort=None, the default + result = idx.difference([]) + tm.assert_index_equal(result, idx) + + +def test_difference_sort_special_true(): + idx = MultiIndex.from_product([[1, 0], ["a", "b"]]) + result = idx.difference([], sort=True) + expected = MultiIndex.from_product([[0, 1], ["a", "b"]]) + tm.assert_index_equal(result, expected) + + +def test_difference_sort_incomparable(): + # GH-24959 + idx = MultiIndex.from_product([[1, pd.Timestamp("2000"), 2], ["a", "b"]]) + + other = MultiIndex.from_product([[3, pd.Timestamp("2000"), 4], ["c", "d"]]) + # sort=None, the default + msg = "sort order is undefined for incomparable objects" + with tm.assert_produces_warning(RuntimeWarning, match=msg): + result = idx.difference(other) + tm.assert_index_equal(result, idx) + + # sort=False + result = idx.difference(other, sort=False) + tm.assert_index_equal(result, idx) + + +def test_difference_sort_incomparable_true(): + idx = MultiIndex.from_product([[1, pd.Timestamp("2000"), 2], ["a", "b"]]) + other = MultiIndex.from_product([[3, pd.Timestamp("2000"), 4], ["c", "d"]]) + + # TODO: this is raising in constructing a Categorical when calling + # algos.safe_sort. Should we catch and re-raise with a better message? + msg = "'values' is not ordered, please explicitly specify the categories order " + with pytest.raises(TypeError, match=msg): + idx.difference(other, sort=True) + + +def test_union(idx, sort): + piece1 = idx[:5][::-1] + piece2 = idx[3:] + + the_union = piece1.union(piece2, sort=sort) + + if sort in (None, False): + tm.assert_index_equal(the_union.sort_values(), idx.sort_values()) + else: + tm.assert_index_equal(the_union, idx) + + # corner case, pass self or empty thing: + the_union = idx.union(idx, sort=sort) + tm.assert_index_equal(the_union, idx) + + the_union = idx.union(idx[:0], sort=sort) + tm.assert_index_equal(the_union, idx) + + tuples = idx.values + result = idx[:4].union(tuples[4:], sort=sort) + if sort is None: + tm.assert_index_equal(result.sort_values(), idx.sort_values()) + else: + assert result.equals(idx) + + +def test_union_with_regular_index(idx, using_infer_string): + other = Index(["A", "B", "C"]) + + result = other.union(idx) + assert ("foo", "one") in result + assert "B" in result + + if using_infer_string: + with pytest.raises(NotImplementedError, match="Can only union"): + idx.union(other) + else: + msg = "The values in the array are unorderable" + with tm.assert_produces_warning(RuntimeWarning, match=msg): + result2 = idx.union(other) + # This is more consistent now, if sorting fails then we don't sort at all + # in the MultiIndex case. + assert not result.equals(result2) + + +def test_intersection(idx, sort): + piece1 = idx[:5][::-1] + piece2 = idx[3:] + + the_int = piece1.intersection(piece2, sort=sort) + + if sort in (None, True): + tm.assert_index_equal(the_int, idx[3:5]) + else: + tm.assert_index_equal(the_int.sort_values(), idx[3:5]) + + # corner case, pass self + the_int = idx.intersection(idx, sort=sort) + tm.assert_index_equal(the_int, idx) + + # empty intersection: disjoint + empty = idx[:2].intersection(idx[2:], sort=sort) + expected = idx[:0] + assert empty.equals(expected) + + tuples = idx.values + result = idx.intersection(tuples) + assert result.equals(idx) + + +@pytest.mark.parametrize( + "method", ["intersection", "union", "difference", "symmetric_difference"] +) +def test_setop_with_categorical(idx, sort, method): + other = idx.to_flat_index().astype("category") + res_names = [None] * idx.nlevels + + result = getattr(idx, method)(other, sort=sort) + expected = getattr(idx, method)(idx, sort=sort).rename(res_names) + tm.assert_index_equal(result, expected) + + result = getattr(idx, method)(other[:5], sort=sort) + expected = getattr(idx, method)(idx[:5], sort=sort).rename(res_names) + tm.assert_index_equal(result, expected) + + +def test_intersection_non_object(idx, sort): + other = Index(range(3), name="foo") + + result = idx.intersection(other, sort=sort) + expected = MultiIndex(levels=idx.levels, codes=[[]] * idx.nlevels, names=None) + tm.assert_index_equal(result, expected, exact=True) + + # if we pass a length-0 ndarray (i.e. no name, we retain our idx.name) + result = idx.intersection(np.asarray(other)[:0], sort=sort) + expected = MultiIndex(levels=idx.levels, codes=[[]] * idx.nlevels, names=idx.names) + tm.assert_index_equal(result, expected, exact=True) + + msg = "other must be a MultiIndex or a list of tuples" + with pytest.raises(TypeError, match=msg): + # With non-zero length non-index, we try and fail to convert to tuples + idx.intersection(np.asarray(other), sort=sort) + + +def test_intersect_equal_sort(): + # GH-24959 + idx = MultiIndex.from_product([[1, 0], ["a", "b"]]) + tm.assert_index_equal(idx.intersection(idx, sort=False), idx) + tm.assert_index_equal(idx.intersection(idx, sort=None), idx) + + +def test_intersect_equal_sort_true(): + idx = MultiIndex.from_product([[1, 0], ["a", "b"]]) + expected = MultiIndex.from_product([[0, 1], ["a", "b"]]) + result = idx.intersection(idx, sort=True) + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize("slice_", [slice(None), slice(0)]) +def test_union_sort_other_empty(slice_): + # https://github.com/pandas-dev/pandas/issues/24959 + idx = MultiIndex.from_product([[1, 0], ["a", "b"]]) + + # default, sort=None + other = idx[slice_] + tm.assert_index_equal(idx.union(other), idx) + tm.assert_index_equal(other.union(idx), idx) + + # sort=False + tm.assert_index_equal(idx.union(other, sort=False), idx) + + +def test_union_sort_other_empty_sort(): + idx = MultiIndex.from_product([[1, 0], ["a", "b"]]) + other = idx[:0] + result = idx.union(other, sort=True) + expected = MultiIndex.from_product([[0, 1], ["a", "b"]]) + tm.assert_index_equal(result, expected) + + +def test_union_sort_other_incomparable(): + # https://github.com/pandas-dev/pandas/issues/24959 + idx = MultiIndex.from_product([[1, pd.Timestamp("2000")], ["a", "b"]]) + + # default, sort=None + with tm.assert_produces_warning(RuntimeWarning): + result = idx.union(idx[:1]) + tm.assert_index_equal(result, idx) + + # sort=False + result = idx.union(idx[:1], sort=False) + tm.assert_index_equal(result, idx) + + +def test_union_sort_other_incomparable_sort(): + idx = MultiIndex.from_product([[1, pd.Timestamp("2000")], ["a", "b"]]) + msg = "'<' not supported between instances of 'Timestamp' and 'int'" + with pytest.raises(TypeError, match=msg): + idx.union(idx[:1], sort=True) + + +def test_union_non_object_dtype_raises(): + # GH#32646 raise NotImplementedError instead of less-informative error + mi = MultiIndex.from_product([["a", "b"], [1, 2]]) + + idx = mi.levels[1] + + msg = "Can only union MultiIndex with MultiIndex or Index of tuples" + with pytest.raises(NotImplementedError, match=msg): + mi.union(idx) + + +def test_union_empty_self_different_names(): + # GH#38423 + mi = MultiIndex.from_arrays([[]]) + mi2 = MultiIndex.from_arrays([[1, 2], [3, 4]], names=["a", "b"]) + result = mi.union(mi2) + expected = MultiIndex.from_arrays([[1, 2], [3, 4]]) + tm.assert_index_equal(result, expected) + + +def test_union_multiindex_empty_rangeindex(): + # GH#41234 + mi = MultiIndex.from_arrays([[1, 2], [3, 4]], names=["a", "b"]) + ri = pd.RangeIndex(0) + + result_left = mi.union(ri) + tm.assert_index_equal(mi, result_left, check_names=False) + + result_right = ri.union(mi) + tm.assert_index_equal(mi, result_right, check_names=False) + + +@pytest.mark.parametrize( + "method", ["union", "intersection", "difference", "symmetric_difference"] +) +def test_setops_sort_validation(method): + idx1 = MultiIndex.from_product([["a", "b"], [1, 2]]) + idx2 = MultiIndex.from_product([["b", "c"], [1, 2]]) + + with pytest.raises(ValueError, match="The 'sort' keyword only takes"): + getattr(idx1, method)(idx2, sort=2) + + # sort=True is supported as of GH#? + getattr(idx1, method)(idx2, sort=True) + + +@pytest.mark.parametrize("val", [pd.NA, 100]) +def test_difference_keep_ea_dtypes(any_numeric_ea_dtype, val): + # GH#48606 + midx = MultiIndex.from_arrays( + [Series([1, 2], dtype=any_numeric_ea_dtype), [2, 1]], names=["a", None] + ) + midx2 = MultiIndex.from_arrays( + [Series([1, 2, val], dtype=any_numeric_ea_dtype), [1, 1, 3]] + ) + result = midx.difference(midx2) + expected = MultiIndex.from_arrays([Series([1], dtype=any_numeric_ea_dtype), [2]]) + tm.assert_index_equal(result, expected) + + result = midx.difference(midx.sort_values(ascending=False)) + expected = MultiIndex.from_arrays( + [Series([], dtype=any_numeric_ea_dtype), Series([], dtype=np.int64)], + names=["a", None], + ) + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize("val", [pd.NA, 5]) +def test_symmetric_difference_keeping_ea_dtype(any_numeric_ea_dtype, val): + # GH#48607 + midx = MultiIndex.from_arrays( + [Series([1, 2], dtype=any_numeric_ea_dtype), [2, 1]], names=["a", None] + ) + midx2 = MultiIndex.from_arrays( + [Series([1, 2, val], dtype=any_numeric_ea_dtype), [1, 1, 3]] + ) + result = midx.symmetric_difference(midx2) + expected = MultiIndex.from_arrays( + [Series([1, 1, val], dtype=any_numeric_ea_dtype), [1, 2, 3]] + ) + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize( + ("tuples", "exp_tuples"), + [ + ([("val1", "test1")], [("val1", "test1")]), + ([("val1", "test1"), ("val1", "test1")], [("val1", "test1")]), + ( + [("val2", "test2"), ("val1", "test1")], + [("val2", "test2"), ("val1", "test1")], + ), + ], +) +def test_intersect_with_duplicates(tuples, exp_tuples): + # GH#36915 + left = MultiIndex.from_tuples(tuples, names=["first", "second"]) + right = MultiIndex.from_tuples( + [("val1", "test1"), ("val1", "test1"), ("val2", "test2")], + names=["first", "second"], + ) + result = left.intersection(right) + expected = MultiIndex.from_tuples(exp_tuples, names=["first", "second"]) + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize( + "data, names, expected", + [ + ((1,), None, [None, None]), + ((1,), ["a"], [None, None]), + ((1,), ["b"], [None, None]), + ((1, 2), ["c", "d"], [None, None]), + ((1, 2), ["b", "a"], [None, None]), + ((1, 2, 3), ["a", "b", "c"], [None, None]), + ((1, 2), ["a", "c"], ["a", None]), + ((1, 2), ["c", "b"], [None, "b"]), + ((1, 2), ["a", "b"], ["a", "b"]), + ((1, 2), [None, "b"], [None, "b"]), + ], +) +def test_maybe_match_names(data, names, expected): + # GH#38323 + mi = MultiIndex.from_tuples([], names=["a", "b"]) + mi2 = MultiIndex.from_tuples([data], names=names) + result = mi._maybe_match_names(mi2) + assert result == expected + + +def test_intersection_equal_different_names(): + # GH#30302 + mi1 = MultiIndex.from_arrays([[1, 2], [3, 4]], names=["c", "b"]) + mi2 = MultiIndex.from_arrays([[1, 2], [3, 4]], names=["a", "b"]) + + result = mi1.intersection(mi2) + expected = MultiIndex.from_arrays([[1, 2], [3, 4]], names=[None, "b"]) + tm.assert_index_equal(result, expected) + + +def test_intersection_different_names(): + # GH#38323 + mi = MultiIndex.from_arrays([[1], [3]], names=["c", "b"]) + mi2 = MultiIndex.from_arrays([[1], [3]]) + result = mi.intersection(mi2) + tm.assert_index_equal(result, mi2) + + +def test_intersection_with_missing_values_on_both_sides(nulls_fixture): + # GH#38623 + mi1 = MultiIndex.from_arrays([[3, nulls_fixture, 4, nulls_fixture], [1, 2, 4, 2]]) + mi2 = MultiIndex.from_arrays([[3, nulls_fixture, 3], [1, 2, 4]]) + result = mi1.intersection(mi2) + expected = MultiIndex.from_arrays([[3, nulls_fixture], [1, 2]]) + tm.assert_index_equal(result, expected) + + +def test_union_with_missing_values_on_both_sides(nulls_fixture): + # GH#38623 + mi1 = MultiIndex.from_arrays([[1, nulls_fixture]]) + mi2 = MultiIndex.from_arrays([[1, nulls_fixture, 3]]) + result = mi1.union(mi2) + expected = MultiIndex.from_arrays([[1, 3, nulls_fixture]]) + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize("dtype", ["float64", "Float64"]) +@pytest.mark.parametrize("sort", [None, False]) +def test_union_nan_got_duplicated(dtype, sort): + # GH#38977, GH#49010 + mi1 = MultiIndex.from_arrays([pd.array([1.0, np.nan], dtype=dtype), [2, 3]]) + mi2 = MultiIndex.from_arrays([pd.array([1.0, np.nan, 3.0], dtype=dtype), [2, 3, 4]]) + result = mi1.union(mi2, sort=sort) + if sort is None: + expected = MultiIndex.from_arrays( + [pd.array([1.0, 3.0, np.nan], dtype=dtype), [2, 4, 3]] + ) + else: + expected = mi2 + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize("val", [4, 1]) +def test_union_keep_ea_dtype(any_numeric_ea_dtype, val): + # GH#48505 + + arr1 = Series([val, 2], dtype=any_numeric_ea_dtype) + arr2 = Series([2, 1], dtype=any_numeric_ea_dtype) + midx = MultiIndex.from_arrays([arr1, [1, 2]], names=["a", None]) + midx2 = MultiIndex.from_arrays([arr2, [2, 1]]) + result = midx.union(midx2) + if val == 4: + expected = MultiIndex.from_arrays( + [Series([1, 2, 4], dtype=any_numeric_ea_dtype), [1, 2, 1]] + ) + else: + expected = MultiIndex.from_arrays( + [Series([1, 2], dtype=any_numeric_ea_dtype), [1, 2]] + ) + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize("dupe_val", [3, pd.NA]) +def test_union_with_duplicates_keep_ea_dtype(dupe_val, any_numeric_ea_dtype): + # GH48900 + mi1 = MultiIndex.from_arrays( + [ + Series([1, dupe_val, 2], dtype=any_numeric_ea_dtype), + Series([1, dupe_val, 2], dtype=any_numeric_ea_dtype), + ] + ) + mi2 = MultiIndex.from_arrays( + [ + Series([2, dupe_val, dupe_val], dtype=any_numeric_ea_dtype), + Series([2, dupe_val, dupe_val], dtype=any_numeric_ea_dtype), + ] + ) + result = mi1.union(mi2) + expected = MultiIndex.from_arrays( + [ + Series([1, 2, dupe_val, dupe_val], dtype=any_numeric_ea_dtype), + Series([1, 2, dupe_val, dupe_val], dtype=any_numeric_ea_dtype), + ] + ) + tm.assert_index_equal(result, expected) + + +@pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") +def test_union_duplicates(index, request): + # GH#38977 + if index.empty or isinstance(index, (IntervalIndex, CategoricalIndex)): + pytest.skip(f"No duplicates in an empty {type(index).__name__}") + + values = index.unique().values.tolist() + mi1 = MultiIndex.from_arrays([values, [1] * len(values)]) + mi2 = MultiIndex.from_arrays([[values[0]] + values, [1] * (len(values) + 1)]) + result = mi2.union(mi1) + expected = mi2.sort_values() + tm.assert_index_equal(result, expected) + + if ( + is_unsigned_integer_dtype(mi2.levels[0]) + and (mi2.get_level_values(0) < 2**63).all() + ): + # GH#47294 - union uses lib.fast_zip, converting data to Python integers + # and loses type information. Result is then unsigned only when values are + # sufficiently large to require unsigned dtype. This happens only if other + # has dups or one of both have missing values + expected = expected.set_levels( + [expected.levels[0].astype(np.int64), expected.levels[1]] + ) + elif is_float_dtype(mi2.levels[0]): + # mi2 has duplicates witch is a different path than above, Fix that path + # to use correct float dtype? + expected = expected.set_levels( + [expected.levels[0].astype(float), expected.levels[1]] + ) + + result = mi1.union(mi2) + tm.assert_index_equal(result, expected) + + +def test_union_keep_dtype_precision(any_real_numeric_dtype): + # GH#48498 + arr1 = Series([4, 1, 1], dtype=any_real_numeric_dtype) + arr2 = Series([1, 4], dtype=any_real_numeric_dtype) + midx = MultiIndex.from_arrays([arr1, [2, 1, 1]], names=["a", None]) + midx2 = MultiIndex.from_arrays([arr2, [1, 2]], names=["a", None]) + + result = midx.union(midx2) + expected = MultiIndex.from_arrays( + ([Series([1, 1, 4], dtype=any_real_numeric_dtype), [1, 1, 2]]), + names=["a", None], + ) + tm.assert_index_equal(result, expected) + + +def test_union_keep_ea_dtype_with_na(any_numeric_ea_dtype): + # GH#48498 + arr1 = Series([4, pd.NA], dtype=any_numeric_ea_dtype) + arr2 = Series([1, pd.NA], dtype=any_numeric_ea_dtype) + midx = MultiIndex.from_arrays([arr1, [2, 1]], names=["a", None]) + midx2 = MultiIndex.from_arrays([arr2, [1, 2]]) + result = midx.union(midx2) + expected = MultiIndex.from_arrays( + [Series([1, 4, pd.NA, pd.NA], dtype=any_numeric_ea_dtype), [1, 2, 1, 2]] + ) + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize( + "levels1, levels2, codes1, codes2, names", + [ + ( + [["a", "b", "c"], [0, ""]], + [["c", "d", "b"], [""]], + [[0, 1, 2], [1, 1, 1]], + [[0, 1, 2], [0, 0, 0]], + ["name1", "name2"], + ), + ], +) +def test_intersection_lexsort_depth(levels1, levels2, codes1, codes2, names): + # GH#25169 + mi1 = MultiIndex(levels=levels1, codes=codes1, names=names) + mi2 = MultiIndex(levels=levels2, codes=codes2, names=names) + mi_int = mi1.intersection(mi2) + assert mi_int._lexsort_depth == 2 + + +@pytest.mark.parametrize( + "a", + [pd.Categorical(["a", "b"], categories=["a", "b"]), ["a", "b"]], +) +@pytest.mark.parametrize( + "b", + [ + pd.Categorical(["a", "b"], categories=["b", "a"], ordered=True), + pd.Categorical(["a", "b"], categories=["b", "a"]), + ], +) +def test_intersection_with_non_lex_sorted_categories(a, b): + # GH#49974 + other = ["1", "2"] + + df1 = DataFrame({"x": a, "y": other}) + df2 = DataFrame({"x": b, "y": other}) + + expected = MultiIndex.from_arrays([a, other], names=["x", "y"]) + + res1 = MultiIndex.from_frame(df1).intersection( + MultiIndex.from_frame(df2.sort_values(["x", "y"])) + ) + res2 = MultiIndex.from_frame(df1).intersection(MultiIndex.from_frame(df2)) + res3 = MultiIndex.from_frame(df1.sort_values(["x", "y"])).intersection( + MultiIndex.from_frame(df2) + ) + res4 = MultiIndex.from_frame(df1.sort_values(["x", "y"])).intersection( + MultiIndex.from_frame(df2.sort_values(["x", "y"])) + ) + + tm.assert_index_equal(res1, expected) + tm.assert_index_equal(res2, expected) + tm.assert_index_equal(res3, expected) + tm.assert_index_equal(res4, expected) + + +@pytest.mark.parametrize("val", [pd.NA, 100]) +def test_intersection_keep_ea_dtypes(val, any_numeric_ea_dtype): + # GH#48604 + midx = MultiIndex.from_arrays( + [Series([1, 2], dtype=any_numeric_ea_dtype), [2, 1]], names=["a", None] + ) + midx2 = MultiIndex.from_arrays( + [Series([1, 2, val], dtype=any_numeric_ea_dtype), [1, 1, 3]] + ) + result = midx.intersection(midx2) + expected = MultiIndex.from_arrays([Series([2], dtype=any_numeric_ea_dtype), [1]]) + tm.assert_index_equal(result, expected) + + +def test_union_with_na_when_constructing_dataframe(): + # GH43222 + series1 = Series( + (1,), + index=MultiIndex.from_arrays( + [Series([None], dtype="str"), Series([None], dtype="str")] + ), + ) + series2 = Series((10, 20), index=MultiIndex.from_tuples(((None, None), ("a", "b")))) + result = DataFrame([series1, series2]) + expected = DataFrame({(np.nan, np.nan): [1.0, 10.0], ("a", "b"): [np.nan, 20.0]}) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_sorting.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_sorting.py new file mode 100644 index 0000000000000000000000000000000000000000..b4dcef71dcf50724c90599b03d1c1c5aa99b7916 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_sorting.py @@ -0,0 +1,349 @@ +import numpy as np +import pytest + +from pandas.errors import ( + PerformanceWarning, + UnsortedIndexError, +) + +from pandas import ( + CategoricalIndex, + DataFrame, + Index, + MultiIndex, + RangeIndex, + Series, + Timestamp, +) +import pandas._testing as tm +from pandas.core.indexes.frozen import FrozenList + + +def test_sortlevel(idx): + tuples = list(idx) + np.random.default_rng(2).shuffle(tuples) + + index = MultiIndex.from_tuples(tuples) + + sorted_idx, _ = index.sortlevel(0) + expected = MultiIndex.from_tuples(sorted(tuples)) + assert sorted_idx.equals(expected) + + sorted_idx, _ = index.sortlevel(0, ascending=False) + assert sorted_idx.equals(expected[::-1]) + + sorted_idx, _ = index.sortlevel(1) + by1 = sorted(tuples, key=lambda x: (x[1], x[0])) + expected = MultiIndex.from_tuples(by1) + assert sorted_idx.equals(expected) + + sorted_idx, _ = index.sortlevel(1, ascending=False) + assert sorted_idx.equals(expected[::-1]) + + +def test_sortlevel_not_sort_remaining(): + mi = MultiIndex.from_tuples([[1, 1, 3], [1, 1, 1]], names=list("ABC")) + sorted_idx, _ = mi.sortlevel("A", sort_remaining=False) + assert sorted_idx.equals(mi) + + +def test_sortlevel_deterministic(): + tuples = [ + ("bar", "one"), + ("foo", "two"), + ("qux", "two"), + ("foo", "one"), + ("baz", "two"), + ("qux", "one"), + ] + + index = MultiIndex.from_tuples(tuples) + + sorted_idx, _ = index.sortlevel(0) + expected = MultiIndex.from_tuples(sorted(tuples)) + assert sorted_idx.equals(expected) + + sorted_idx, _ = index.sortlevel(0, ascending=False) + assert sorted_idx.equals(expected[::-1]) + + sorted_idx, _ = index.sortlevel(1) + by1 = sorted(tuples, key=lambda x: (x[1], x[0])) + expected = MultiIndex.from_tuples(by1) + assert sorted_idx.equals(expected) + + sorted_idx, _ = index.sortlevel(1, ascending=False) + assert sorted_idx.equals(expected[::-1]) + + +def test_sortlevel_na_position(): + # GH#51612 + midx = MultiIndex.from_tuples([(1, np.nan), (1, 1)]) + result = midx.sortlevel(level=[0, 1], na_position="last")[0] + expected = MultiIndex.from_tuples([(1, 1), (1, np.nan)]) + tm.assert_index_equal(result, expected) + + +def test_numpy_argsort(idx): + result = np.argsort(idx) + expected = idx.argsort() + tm.assert_numpy_array_equal(result, expected) + + # these are the only two types that perform + # pandas compatibility input validation - the + # rest already perform separate (or no) such + # validation via their 'values' attribute as + # defined in pandas.core.indexes/base.py - they + # cannot be changed at the moment due to + # backwards compatibility concerns + if isinstance(type(idx), (CategoricalIndex, RangeIndex)): + msg = "the 'axis' parameter is not supported" + with pytest.raises(ValueError, match=msg): + np.argsort(idx, axis=1) + + msg = "the 'kind' parameter is not supported" + with pytest.raises(ValueError, match=msg): + np.argsort(idx, kind="mergesort") + + msg = "the 'order' parameter is not supported" + with pytest.raises(ValueError, match=msg): + np.argsort(idx, order=("a", "b")) + + +def test_unsortedindex(): + # GH 11897 + mi = MultiIndex.from_tuples( + [("z", "a"), ("x", "a"), ("y", "b"), ("x", "b"), ("y", "a"), ("z", "b")], + names=["one", "two"], + ) + df = DataFrame([[i, 10 * i] for i in range(6)], index=mi, columns=["one", "two"]) + + # GH 16734: not sorted, but no real slicing + result = df.loc(axis=0)["z", "a"] + expected = df.iloc[0] + tm.assert_series_equal(result, expected) + + msg = ( + "MultiIndex slicing requires the index to be lexsorted: " + r"slicing on levels \[1\], lexsort depth 0" + ) + with pytest.raises(UnsortedIndexError, match=msg): + df.loc(axis=0)["z", slice("a")] + df.sort_index(inplace=True) + assert len(df.loc(axis=0)["z", :]) == 2 + + with pytest.raises(KeyError, match="'q'"): + df.loc(axis=0)["q", :] + + +def test_unsortedindex_doc_examples(): + # https://pandas.pydata.org/pandas-docs/stable/advanced.html#sorting-a-multiindex + dfm = DataFrame( + { + "jim": [0, 0, 1, 1], + "joe": ["x", "x", "z", "y"], + "jolie": np.random.default_rng(2).random(4), + } + ) + + dfm = dfm.set_index(["jim", "joe"]) + with tm.assert_produces_warning(PerformanceWarning): + dfm.loc[(1, "z")] + + msg = r"Key length \(2\) was greater than MultiIndex lexsort depth \(1\)" + with pytest.raises(UnsortedIndexError, match=msg): + dfm.loc[(0, "y"):(1, "z")] + + assert not dfm.index._is_lexsorted() + assert dfm.index._lexsort_depth == 1 + + # sort it + dfm = dfm.sort_index() + dfm.loc[(1, "z")] + dfm.loc[(0, "y"):(1, "z")] + + assert dfm.index._is_lexsorted() + assert dfm.index._lexsort_depth == 2 + + +def test_reconstruct_sort(): + # starts off lexsorted & monotonic + mi = MultiIndex.from_arrays([["A", "A", "B", "B", "B"], [1, 2, 1, 2, 3]]) + assert mi.is_monotonic_increasing + recons = mi._sort_levels_monotonic() + assert recons.is_monotonic_increasing + assert mi is recons + + assert mi.equals(recons) + assert Index(mi.values).equals(Index(recons.values)) + + # cannot convert to lexsorted + mi = MultiIndex.from_tuples( + [("z", "a"), ("x", "a"), ("y", "b"), ("x", "b"), ("y", "a"), ("z", "b")], + names=["one", "two"], + ) + assert not mi.is_monotonic_increasing + recons = mi._sort_levels_monotonic() + assert not recons.is_monotonic_increasing + assert mi.equals(recons) + assert Index(mi.values).equals(Index(recons.values)) + + # cannot convert to lexsorted + mi = MultiIndex( + levels=[["b", "d", "a"], [1, 2, 3]], + codes=[[0, 1, 0, 2], [2, 0, 0, 1]], + names=["col1", "col2"], + ) + assert not mi.is_monotonic_increasing + recons = mi._sort_levels_monotonic() + assert not recons.is_monotonic_increasing + assert mi.equals(recons) + assert Index(mi.values).equals(Index(recons.values)) + + +def test_reconstruct_remove_unused(): + # xref to GH 2770 + df = DataFrame( + [["deleteMe", 1, 9], ["keepMe", 2, 9], ["keepMeToo", 3, 9]], + columns=["first", "second", "third"], + ) + df2 = df.set_index(["first", "second"], drop=False) + df2 = df2[df2["first"] != "deleteMe"] + + # removed levels are there + expected = MultiIndex( + levels=[["deleteMe", "keepMe", "keepMeToo"], [1, 2, 3]], + codes=[[1, 2], [1, 2]], + names=["first", "second"], + ) + result = df2.index + tm.assert_index_equal(result, expected) + + expected = MultiIndex( + levels=[["keepMe", "keepMeToo"], [2, 3]], + codes=[[0, 1], [0, 1]], + names=["first", "second"], + ) + result = df2.index.remove_unused_levels() + tm.assert_index_equal(result, expected) + + # idempotent + result2 = result.remove_unused_levels() + tm.assert_index_equal(result2, expected) + assert result2.is_(result) + + +@pytest.mark.parametrize( + "first_type,second_type", [("int64", "int64"), ("datetime64[D]", "str")] +) +def test_remove_unused_levels_large(first_type, second_type): + # GH16556 + + # because tests should be deterministic (and this test in particular + # checks that levels are removed, which is not the case for every + # random input): + rng = np.random.default_rng(10) # seed is arbitrary value that works + + size = 1 << 16 + df = DataFrame( + { + "first": rng.integers(0, 1 << 13, size).astype(first_type), + "second": rng.integers(0, 1 << 10, size).astype(second_type), + "third": rng.random(size), + } + ) + df = df.groupby(["first", "second"]).sum() + df = df[df.third < 0.1] + + result = df.index.remove_unused_levels() + assert len(result.levels[0]) < len(df.index.levels[0]) + assert len(result.levels[1]) < len(df.index.levels[1]) + assert result.equals(df.index) + + expected = df.reset_index().set_index(["first", "second"]).index + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize("level0", [["a", "d", "b"], ["a", "d", "b", "unused"]]) +@pytest.mark.parametrize( + "level1", [["w", "x", "y", "z"], ["w", "x", "y", "z", "unused"]] +) +def test_remove_unused_nan(level0, level1): + # GH 18417 + mi = MultiIndex(levels=[level0, level1], codes=[[0, 2, -1, 1, -1], [0, 1, 2, 3, 2]]) + + result = mi.remove_unused_levels() + tm.assert_index_equal(result, mi) + for level in 0, 1: + assert "unused" not in result.levels[level] + + +def test_argsort(idx): + result = idx.argsort() + expected = idx.values.argsort() + tm.assert_numpy_array_equal(result, expected) + + +def test_remove_unused_levels_with_nan(): + # GH 37510 + idx = Index([(1, np.nan), (3, 4)]).rename(["id1", "id2"]) + idx = idx.set_levels(["a", np.nan], level="id1") + idx = idx.remove_unused_levels() + result = idx.levels + expected = FrozenList([["a", np.nan], [4]]) + assert str(result) == str(expected) + + +def test_sort_values_nan(): + # GH48495, GH48626 + midx = MultiIndex(levels=[["A", "B", "C"], ["D"]], codes=[[1, 0, 2], [-1, -1, 0]]) + result = midx.sort_values() + expected = MultiIndex( + levels=[["A", "B", "C"], ["D"]], codes=[[0, 1, 2], [-1, -1, 0]] + ) + tm.assert_index_equal(result, expected) + + +def test_sort_values_incomparable(): + # GH48495 + mi = MultiIndex.from_arrays( + [ + [1, Timestamp("2000-01-01")], + [3, 4], + ] + ) + match = "'<' not supported between instances of 'Timestamp' and 'int'" + with pytest.raises(TypeError, match=match): + mi.sort_values() + + +@pytest.mark.parametrize("na_position", ["first", "last"]) +@pytest.mark.parametrize("dtype", ["float64", "Int64", "Float64"]) +def test_sort_values_with_na_na_position(dtype, na_position): + # 51612 + arrays = [ + Series([1, 1, 2], dtype=dtype), + Series([1, None, 3], dtype=dtype), + ] + index = MultiIndex.from_arrays(arrays) + result = index.sort_values(na_position=na_position) + if na_position == "first": + arrays = [ + Series([1, 1, 2], dtype=dtype), + Series([None, 1, 3], dtype=dtype), + ] + else: + arrays = [ + Series([1, 1, 2], dtype=dtype), + Series([1, None, 3], dtype=dtype), + ] + expected = MultiIndex.from_arrays(arrays) + tm.assert_index_equal(result, expected) + + +def test_sort_unnecessary_warning(): + # GH#55386 + midx = MultiIndex.from_tuples([(1.5, 2), (3.5, 3), (0, 1)]) + midx = midx.set_levels([2.5, np.nan, 1], level=0) + result = midx.sort_values() + expected = MultiIndex.from_tuples([(1, 3), (2.5, 1), (np.nan, 2)]) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_take.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_take.py new file mode 100644 index 0000000000000000000000000000000000000000..543cba25c373b71b8c79c7fe0ea5ae2fb7f40b18 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/multi/test_take.py @@ -0,0 +1,78 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm + + +def test_take(idx): + indexer = [4, 3, 0, 2] + result = idx.take(indexer) + expected = idx[indexer] + assert result.equals(expected) + + # GH 10791 + msg = "'MultiIndex' object has no attribute 'freq'" + with pytest.raises(AttributeError, match=msg): + idx.freq + + +def test_take_invalid_kwargs(idx): + indices = [1, 2] + + msg = r"take\(\) got an unexpected keyword argument 'foo'" + with pytest.raises(TypeError, match=msg): + idx.take(indices, foo=2) + + msg = "the 'out' parameter is not supported" + with pytest.raises(ValueError, match=msg): + idx.take(indices, out=indices) + + msg = "the 'mode' parameter is not supported" + with pytest.raises(ValueError, match=msg): + idx.take(indices, mode="clip") + + +def test_take_fill_value(): + # GH 12631 + vals = [["A", "B"], [pd.Timestamp("2011-01-01"), pd.Timestamp("2011-01-02")]] + idx = pd.MultiIndex.from_product(vals, names=["str", "dt"]) + + result = idx.take(np.array([1, 0, -1])) + exp_vals = [ + ("A", pd.Timestamp("2011-01-02")), + ("A", pd.Timestamp("2011-01-01")), + ("B", pd.Timestamp("2011-01-02")), + ] + expected = pd.MultiIndex.from_tuples(exp_vals, names=["str", "dt"]) + tm.assert_index_equal(result, expected) + + # fill_value + result = idx.take(np.array([1, 0, -1]), fill_value=True) + exp_vals = [ + ("A", pd.Timestamp("2011-01-02")), + ("A", pd.Timestamp("2011-01-01")), + (np.nan, pd.NaT), + ] + expected = pd.MultiIndex.from_tuples(exp_vals, names=["str", "dt"]) + tm.assert_index_equal(result, expected) + + # allow_fill=False + result = idx.take(np.array([1, 0, -1]), allow_fill=False, fill_value=True) + exp_vals = [ + ("A", pd.Timestamp("2011-01-02")), + ("A", pd.Timestamp("2011-01-01")), + ("B", pd.Timestamp("2011-01-02")), + ] + expected = pd.MultiIndex.from_tuples(exp_vals, names=["str", "dt"]) + tm.assert_index_equal(result, expected) + + msg = "When allow_fill=True and fill_value is not None, all indices must be >= -1" + with pytest.raises(ValueError, match=msg): + idx.take(np.array([1, 0, -2]), fill_value=True) + with pytest.raises(ValueError, match=msg): + idx.take(np.array([1, 0, -5]), fill_value=True) + + msg = "index -5 is out of bounds for( axis 0 with)? size 4" + with pytest.raises(IndexError, match=msg): + idx.take(np.array([1, -5])) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/numeric/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/numeric/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/numeric/test_astype.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/numeric/test_astype.py new file mode 100644 index 0000000000000000000000000000000000000000..1c2df6008de5d85789b026e947ac27a8036a9be7 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/numeric/test_astype.py @@ -0,0 +1,95 @@ +import numpy as np +import pytest + +from pandas import ( + Index, + to_datetime, + to_timedelta, +) +import pandas._testing as tm + + +class TestAstype: + def test_astype_float64_to_uint64(self): + # GH#45309 used to incorrectly return Index with int64 dtype + idx = Index([0.0, 5.0, 10.0, 15.0, 20.0], dtype=np.float64) + result = idx.astype("u8") + expected = Index([0, 5, 10, 15, 20], dtype=np.uint64) + tm.assert_index_equal(result, expected, exact=True) + + idx_with_negatives = idx - 10 + with pytest.raises(ValueError, match="losslessly"): + idx_with_negatives.astype(np.uint64) + + def test_astype_float64_to_object(self): + float_index = Index([0.0, 2.5, 5.0, 7.5, 10.0], dtype=np.float64) + result = float_index.astype(object) + assert result.equals(float_index) + assert float_index.equals(result) + assert isinstance(result, Index) and result.dtype == object + + def test_astype_float64_mixed_to_object(self): + # mixed int-float + idx = Index([1.5, 2, 3, 4, 5], dtype=np.float64) + idx.name = "foo" + result = idx.astype(object) + assert result.equals(idx) + assert idx.equals(result) + assert isinstance(result, Index) and result.dtype == object + + @pytest.mark.parametrize("dtype", ["int16", "int32", "int64"]) + def test_astype_float64_to_int_dtype(self, dtype): + # GH#12881 + # a float astype int + idx = Index([0, 1, 2], dtype=np.float64) + result = idx.astype(dtype) + expected = Index([0, 1, 2], dtype=dtype) + tm.assert_index_equal(result, expected, exact=True) + + idx = Index([0, 1.1, 2], dtype=np.float64) + result = idx.astype(dtype) + expected = Index([0, 1, 2], dtype=dtype) + tm.assert_index_equal(result, expected, exact=True) + + @pytest.mark.parametrize("dtype", ["float32", "float64"]) + def test_astype_float64_to_float_dtype(self, dtype): + # GH#12881 + # a float astype int + idx = Index([0, 1, 2], dtype=np.float64) + result = idx.astype(dtype) + assert isinstance(result, Index) and result.dtype == dtype + + @pytest.mark.parametrize("dtype", ["M8[ns]", "m8[ns]"]) + def test_astype_float_to_datetimelike(self, dtype): + # GH#49660 pre-2.0 Index.astype from floating to M8/m8/Period raised, + # inconsistent with Series.astype + idx = Index([0, 1.1, 2], dtype=np.float64) + + result = idx.astype(dtype) + if dtype[0] == "M": + expected = to_datetime(idx.values) + else: + expected = to_timedelta(idx.values) + tm.assert_index_equal(result, expected) + + # check that we match Series behavior + result = idx.to_series().set_axis(range(3)).astype(dtype) + expected = expected.to_series().set_axis(range(3)) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("dtype", [int, "int16", "int32", "int64"]) + @pytest.mark.parametrize("non_finite", [np.inf, np.nan]) + def test_cannot_cast_inf_to_int(self, non_finite, dtype): + # GH#13149 + idx = Index([1, 2, non_finite], dtype=np.float64) + + msg = r"Cannot convert non-finite values \(NA or inf\) to integer" + with pytest.raises(ValueError, match=msg): + idx.astype(dtype) + + def test_astype_from_object(self): + index = Index([1.0, np.nan, 0.2], dtype="object") + result = index.astype(float) + expected = Index([1.0, np.nan, 0.2], dtype=np.float64) + assert result.dtype == expected.dtype + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/numeric/test_indexing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/numeric/test_indexing.py new file mode 100644 index 0000000000000000000000000000000000000000..cd28d519313ed36228040361dfbb2a8dccf77be5 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/numeric/test_indexing.py @@ -0,0 +1,611 @@ +import numpy as np +import pytest + +from pandas.errors import InvalidIndexError + +from pandas import ( + NA, + Index, + RangeIndex, + Series, + Timestamp, +) +import pandas._testing as tm +from pandas.core.arrays import ( + ArrowExtensionArray, + FloatingArray, +) + + +@pytest.fixture +def index_large(): + # large values used in Index[uint64] tests where no compat needed with Int64/Float64 + large = [2**63, 2**63 + 10, 2**63 + 15, 2**63 + 20, 2**63 + 25] + return Index(large, dtype=np.uint64) + + +class TestGetLoc: + def test_get_loc(self): + index = Index([0, 1, 2]) + assert index.get_loc(1) == 1 + + def test_get_loc_raises_bad_label(self): + index = Index([0, 1, 2]) + with pytest.raises(InvalidIndexError, match=r"\[1, 2\]"): + index.get_loc([1, 2]) + + def test_get_loc_float64(self): + idx = Index([0.0, 1.0, 2.0], dtype=np.float64) + + with pytest.raises(KeyError, match="^'foo'$"): + idx.get_loc("foo") + with pytest.raises(KeyError, match=r"^1\.5$"): + idx.get_loc(1.5) + with pytest.raises(KeyError, match="^True$"): + idx.get_loc(True) + with pytest.raises(KeyError, match="^False$"): + idx.get_loc(False) + + def test_get_loc_na(self): + idx = Index([np.nan, 1, 2], dtype=np.float64) + assert idx.get_loc(1) == 1 + assert idx.get_loc(np.nan) == 0 + + idx = Index([np.nan, 1, np.nan], dtype=np.float64) + assert idx.get_loc(1) == 1 + + # representable by slice [0:2:2] + msg = "'Cannot get left slice bound for non-unique label: nan'" + with pytest.raises(KeyError, match=msg): + idx.slice_locs(np.nan) + # not representable by slice + idx = Index([np.nan, 1, np.nan, np.nan], dtype=np.float64) + assert idx.get_loc(1) == 1 + msg = "'Cannot get left slice bound for non-unique label: nan" + with pytest.raises(KeyError, match=msg): + idx.slice_locs(np.nan) + + def test_get_loc_missing_nan(self): + # GH#8569 + idx = Index([1, 2], dtype=np.float64) + assert idx.get_loc(1) == 0 + with pytest.raises(KeyError, match=r"^3$"): + idx.get_loc(3) + with pytest.raises(KeyError, match="^nan$"): + idx.get_loc(np.nan) + with pytest.raises(InvalidIndexError, match=r"\[nan\]"): + # listlike/non-hashable raises TypeError + idx.get_loc([np.nan]) + + @pytest.mark.parametrize("vals", [[1], [1.0], [Timestamp("2019-12-31")], ["test"]]) + def test_get_loc_float_index_nan_with_method(self, vals): + # GH#39382 + idx = Index(vals) + with pytest.raises(KeyError, match="nan"): + idx.get_loc(np.nan) + + @pytest.mark.parametrize("dtype", ["f8", "i8", "u8"]) + def test_get_loc_numericindex_none_raises(self, dtype): + # case that goes through searchsorted and key is non-comparable to values + arr = np.arange(10**7, dtype=dtype) + idx = Index(arr) + with pytest.raises(KeyError, match="None"): + idx.get_loc(None) + + def test_get_loc_overflows(self): + # unique but non-monotonic goes through IndexEngine.mapping.get_item + idx = Index([0, 2, 1]) + + val = np.iinfo(np.int64).max + 1 + + with pytest.raises(KeyError, match=str(val)): + idx.get_loc(val) + with pytest.raises(KeyError, match=str(val)): + idx._engine.get_loc(val) + + +class TestGetIndexer: + def test_get_indexer(self): + index1 = Index([1, 2, 3, 4, 5]) + index2 = Index([2, 4, 6]) + + r1 = index1.get_indexer(index2) + e1 = np.array([1, 3, -1], dtype=np.intp) + tm.assert_almost_equal(r1, e1) + + @pytest.mark.parametrize("reverse", [True, False]) + @pytest.mark.parametrize( + "expected,method", + [ + (np.array([-1, 0, 0, 1, 1], dtype=np.intp), "pad"), + (np.array([-1, 0, 0, 1, 1], dtype=np.intp), "ffill"), + (np.array([0, 0, 1, 1, 2], dtype=np.intp), "backfill"), + (np.array([0, 0, 1, 1, 2], dtype=np.intp), "bfill"), + ], + ) + def test_get_indexer_methods(self, reverse, expected, method): + index1 = Index([1, 2, 3, 4, 5]) + index2 = Index([2, 4, 6]) + + if reverse: + index1 = index1[::-1] + expected = expected[::-1] + + result = index2.get_indexer(index1, method=method) + tm.assert_almost_equal(result, expected) + + def test_get_indexer_invalid(self): + # GH10411 + index = Index(np.arange(10)) + + with pytest.raises(ValueError, match="tolerance argument"): + index.get_indexer([1, 0], tolerance=1) + + with pytest.raises(ValueError, match="limit argument"): + index.get_indexer([1, 0], limit=1) + + @pytest.mark.parametrize( + "method, tolerance, indexer, expected", + [ + ("pad", None, [0, 5, 9], [0, 5, 9]), + ("backfill", None, [0, 5, 9], [0, 5, 9]), + ("nearest", None, [0, 5, 9], [0, 5, 9]), + ("pad", 0, [0, 5, 9], [0, 5, 9]), + ("backfill", 0, [0, 5, 9], [0, 5, 9]), + ("nearest", 0, [0, 5, 9], [0, 5, 9]), + ("pad", None, [0.2, 1.8, 8.5], [0, 1, 8]), + ("backfill", None, [0.2, 1.8, 8.5], [1, 2, 9]), + ("nearest", None, [0.2, 1.8, 8.5], [0, 2, 9]), + ("pad", 1, [0.2, 1.8, 8.5], [0, 1, 8]), + ("backfill", 1, [0.2, 1.8, 8.5], [1, 2, 9]), + ("nearest", 1, [0.2, 1.8, 8.5], [0, 2, 9]), + ("pad", 0.2, [0.2, 1.8, 8.5], [0, -1, -1]), + ("backfill", 0.2, [0.2, 1.8, 8.5], [-1, 2, -1]), + ("nearest", 0.2, [0.2, 1.8, 8.5], [0, 2, -1]), + ], + ) + def test_get_indexer_nearest(self, method, tolerance, indexer, expected): + index = Index(np.arange(10)) + + actual = index.get_indexer(indexer, method=method, tolerance=tolerance) + tm.assert_numpy_array_equal(actual, np.array(expected, dtype=np.intp)) + + @pytest.mark.parametrize("listtype", [list, tuple, Series, np.array]) + @pytest.mark.parametrize( + "tolerance, expected", + list( + zip( + [[0.3, 0.3, 0.1], [0.2, 0.1, 0.1], [0.1, 0.5, 0.5]], + [[0, 2, -1], [0, -1, -1], [-1, 2, 9]], + ) + ), + ) + def test_get_indexer_nearest_listlike_tolerance( + self, tolerance, expected, listtype + ): + index = Index(np.arange(10)) + + actual = index.get_indexer( + [0.2, 1.8, 8.5], method="nearest", tolerance=listtype(tolerance) + ) + tm.assert_numpy_array_equal(actual, np.array(expected, dtype=np.intp)) + + def test_get_indexer_nearest_error(self): + index = Index(np.arange(10)) + with pytest.raises(ValueError, match="limit argument"): + index.get_indexer([1, 0], method="nearest", limit=1) + + with pytest.raises(ValueError, match="tolerance size must match"): + index.get_indexer([1, 0], method="nearest", tolerance=[1, 2, 3]) + + @pytest.mark.parametrize( + "method,expected", + [("pad", [8, 7, 0]), ("backfill", [9, 8, 1]), ("nearest", [9, 7, 0])], + ) + def test_get_indexer_nearest_decreasing(self, method, expected): + index = Index(np.arange(10))[::-1] + + actual = index.get_indexer([0, 5, 9], method=method) + tm.assert_numpy_array_equal(actual, np.array([9, 4, 0], dtype=np.intp)) + + actual = index.get_indexer([0.2, 1.8, 8.5], method=method) + tm.assert_numpy_array_equal(actual, np.array(expected, dtype=np.intp)) + + @pytest.mark.parametrize("idx_dtype", ["int64", "float64", "uint64", "range"]) + @pytest.mark.parametrize("method", ["get_indexer", "get_indexer_non_unique"]) + def test_get_indexer_numeric_index_boolean_target(self, method, idx_dtype): + # GH 16877 + + if idx_dtype == "range": + numeric_index = RangeIndex(4) + else: + numeric_index = Index(np.arange(4, dtype=idx_dtype)) + + other = Index([True, False, True]) + + result = getattr(numeric_index, method)(other) + expected = np.array([-1, -1, -1], dtype=np.intp) + if method == "get_indexer": + tm.assert_numpy_array_equal(result, expected) + else: + missing = np.arange(3, dtype=np.intp) + tm.assert_numpy_array_equal(result[0], expected) + tm.assert_numpy_array_equal(result[1], missing) + + @pytest.mark.parametrize("method", ["pad", "backfill", "nearest"]) + def test_get_indexer_with_method_numeric_vs_bool(self, method): + left = Index([1, 2, 3]) + right = Index([True, False]) + + with pytest.raises(TypeError, match="Cannot compare"): + left.get_indexer(right, method=method) + + with pytest.raises(TypeError, match="Cannot compare"): + right.get_indexer(left, method=method) + + def test_get_indexer_numeric_vs_bool(self): + left = Index([1, 2, 3]) + right = Index([True, False]) + + res = left.get_indexer(right) + expected = -1 * np.ones(len(right), dtype=np.intp) + tm.assert_numpy_array_equal(res, expected) + + res = right.get_indexer(left) + expected = -1 * np.ones(len(left), dtype=np.intp) + tm.assert_numpy_array_equal(res, expected) + + res = left.get_indexer_non_unique(right)[0] + expected = -1 * np.ones(len(right), dtype=np.intp) + tm.assert_numpy_array_equal(res, expected) + + res = right.get_indexer_non_unique(left)[0] + expected = -1 * np.ones(len(left), dtype=np.intp) + tm.assert_numpy_array_equal(res, expected) + + def test_get_indexer_float64(self): + idx = Index([0.0, 1.0, 2.0], dtype=np.float64) + tm.assert_numpy_array_equal( + idx.get_indexer(idx), np.array([0, 1, 2], dtype=np.intp) + ) + + target = [-0.1, 0.5, 1.1] + tm.assert_numpy_array_equal( + idx.get_indexer(target, "pad"), np.array([-1, 0, 1], dtype=np.intp) + ) + tm.assert_numpy_array_equal( + idx.get_indexer(target, "backfill"), np.array([0, 1, 2], dtype=np.intp) + ) + tm.assert_numpy_array_equal( + idx.get_indexer(target, "nearest"), np.array([0, 1, 1], dtype=np.intp) + ) + + def test_get_indexer_nan(self): + # GH#7820 + result = Index([1, 2, np.nan], dtype=np.float64).get_indexer([np.nan]) + expected = np.array([2], dtype=np.intp) + tm.assert_numpy_array_equal(result, expected) + + def test_get_indexer_int64(self): + index = Index(range(0, 20, 2), dtype=np.int64) + target = Index(np.arange(10), dtype=np.int64) + indexer = index.get_indexer(target) + expected = np.array([0, -1, 1, -1, 2, -1, 3, -1, 4, -1], dtype=np.intp) + tm.assert_numpy_array_equal(indexer, expected) + + target = Index(np.arange(10), dtype=np.int64) + indexer = index.get_indexer(target, method="pad") + expected = np.array([0, 0, 1, 1, 2, 2, 3, 3, 4, 4], dtype=np.intp) + tm.assert_numpy_array_equal(indexer, expected) + + target = Index(np.arange(10), dtype=np.int64) + indexer = index.get_indexer(target, method="backfill") + expected = np.array([0, 1, 1, 2, 2, 3, 3, 4, 4, 5], dtype=np.intp) + tm.assert_numpy_array_equal(indexer, expected) + + def test_get_indexer_uint64(self, index_large): + target = Index(np.arange(10).astype("uint64") * 5 + 2**63) + indexer = index_large.get_indexer(target) + expected = np.array([0, -1, 1, 2, 3, 4, -1, -1, -1, -1], dtype=np.intp) + tm.assert_numpy_array_equal(indexer, expected) + + target = Index(np.arange(10).astype("uint64") * 5 + 2**63) + indexer = index_large.get_indexer(target, method="pad") + expected = np.array([0, 0, 1, 2, 3, 4, 4, 4, 4, 4], dtype=np.intp) + tm.assert_numpy_array_equal(indexer, expected) + + target = Index(np.arange(10).astype("uint64") * 5 + 2**63) + indexer = index_large.get_indexer(target, method="backfill") + expected = np.array([0, 1, 1, 2, 3, 4, -1, -1, -1, -1], dtype=np.intp) + tm.assert_numpy_array_equal(indexer, expected) + + @pytest.mark.parametrize("val, val2", [(4, 5), (4, 4), (4, NA), (NA, NA)]) + def test_get_loc_masked(self, val, val2, any_numeric_ea_and_arrow_dtype): + # GH#39133 + idx = Index([1, 2, 3, val, val2], dtype=any_numeric_ea_and_arrow_dtype) + result = idx.get_loc(2) + assert result == 1 + + with pytest.raises(KeyError, match="9"): + idx.get_loc(9) + + def test_get_loc_masked_na(self, any_numeric_ea_and_arrow_dtype): + # GH#39133 + idx = Index([1, 2, NA], dtype=any_numeric_ea_and_arrow_dtype) + result = idx.get_loc(NA) + assert result == 2 + + idx = Index([1, 2, NA, NA], dtype=any_numeric_ea_and_arrow_dtype) + result = idx.get_loc(NA) + tm.assert_numpy_array_equal(result, np.array([False, False, True, True])) + + idx = Index([1, 2, 3], dtype=any_numeric_ea_and_arrow_dtype) + with pytest.raises(KeyError, match="NA"): + idx.get_loc(NA) + + def test_get_loc_masked_na_and_nan(self): + # GH#39133 + idx = Index( + FloatingArray( + np.array([1, 2, 1, np.nan]), mask=np.array([False, False, True, False]) + ) + ) + result = idx.get_loc(NA) + assert result == 2 + result = idx.get_loc(np.nan) + assert result == 3 + + idx = Index( + FloatingArray(np.array([1, 2, 1.0]), mask=np.array([False, False, True])) + ) + result = idx.get_loc(NA) + assert result == 2 + with pytest.raises(KeyError, match="nan"): + idx.get_loc(np.nan) + + idx = Index( + FloatingArray( + np.array([1, 2, np.nan]), mask=np.array([False, False, False]) + ) + ) + result = idx.get_loc(np.nan) + assert result == 2 + with pytest.raises(KeyError, match="NA"): + idx.get_loc(NA) + + @pytest.mark.parametrize("val", [4, 2]) + def test_get_indexer_masked_na(self, any_numeric_ea_and_arrow_dtype, val): + # GH#39133 + idx = Index([1, 2, NA, 3, val], dtype=any_numeric_ea_and_arrow_dtype) + result = idx.get_indexer_for([1, NA, 5]) + expected = np.array([0, 2, -1]) + tm.assert_numpy_array_equal(result, expected, check_dtype=False) + + @pytest.mark.parametrize("dtype", ["boolean", "bool[pyarrow]"]) + def test_get_indexer_masked_na_boolean(self, dtype): + # GH#39133 + if dtype == "bool[pyarrow]": + pytest.importorskip("pyarrow") + idx = Index([True, False, NA], dtype=dtype) + result = idx.get_loc(False) + assert result == 1 + result = idx.get_loc(NA) + assert result == 2 + + def test_get_indexer_arrow_dictionary_target(self): + pa = pytest.importorskip("pyarrow") + target = Index( + ArrowExtensionArray( + pa.array([1, 2], type=pa.dictionary(pa.int8(), pa.int8())) + ) + ) + idx = Index([1]) + + result = idx.get_indexer(target) + expected = np.array([0, -1], dtype=np.int64) + tm.assert_numpy_array_equal(result, expected) + + result_1, result_2 = idx.get_indexer_non_unique(target) + expected_1, expected_2 = np.array([0, -1], dtype=np.int64), np.array( + [1], dtype=np.int64 + ) + tm.assert_numpy_array_equal(result_1, expected_1) + tm.assert_numpy_array_equal(result_2, expected_2) + + +class TestWhere: + @pytest.mark.parametrize( + "index", + [ + Index(np.arange(5, dtype="float64")), + Index(range(0, 20, 2), dtype=np.int64), + Index(np.arange(5, dtype="uint64")), + ], + ) + def test_where(self, listlike_box, index): + cond = [True] * len(index) + expected = index + result = index.where(listlike_box(cond)) + + cond = [False] + [True] * (len(index) - 1) + expected = Index([index._na_value] + index[1:].tolist(), dtype=np.float64) + result = index.where(listlike_box(cond)) + tm.assert_index_equal(result, expected) + + def test_where_uint64(self): + idx = Index([0, 6, 2], dtype=np.uint64) + mask = np.array([False, True, False]) + other = np.array([1], dtype=np.int64) + + expected = Index([1, 6, 1], dtype=np.uint64) + + result = idx.where(mask, other) + tm.assert_index_equal(result, expected) + + result = idx.putmask(~mask, other) + tm.assert_index_equal(result, expected) + + def test_where_infers_type_instead_of_trying_to_convert_string_to_float(self): + # GH 32413 + index = Index([1, np.nan]) + cond = index.notna() + other = Index(["a", "b"], dtype="string") + + expected = Index([1.0, "b"]) + result = index.where(cond, other) + + tm.assert_index_equal(result, expected) + + +class TestTake: + @pytest.mark.parametrize("idx_dtype", [np.float64, np.int64, np.uint64]) + def test_take_preserve_name(self, idx_dtype): + index = Index([1, 2, 3, 4], dtype=idx_dtype, name="foo") + taken = index.take([3, 0, 1]) + assert index.name == taken.name + + def test_take_fill_value_float64(self): + # GH 12631 + idx = Index([1.0, 2.0, 3.0], name="xxx", dtype=np.float64) + result = idx.take(np.array([1, 0, -1])) + expected = Index([2.0, 1.0, 3.0], dtype=np.float64, name="xxx") + tm.assert_index_equal(result, expected) + + # fill_value + result = idx.take(np.array([1, 0, -1]), fill_value=True) + expected = Index([2.0, 1.0, np.nan], dtype=np.float64, name="xxx") + tm.assert_index_equal(result, expected) + + # allow_fill=False + result = idx.take(np.array([1, 0, -1]), allow_fill=False, fill_value=True) + expected = Index([2.0, 1.0, 3.0], dtype=np.float64, name="xxx") + tm.assert_index_equal(result, expected) + + msg = ( + "When allow_fill=True and fill_value is not None, " + "all indices must be >= -1" + ) + with pytest.raises(ValueError, match=msg): + idx.take(np.array([1, 0, -2]), fill_value=True) + with pytest.raises(ValueError, match=msg): + idx.take(np.array([1, 0, -5]), fill_value=True) + + msg = "index -5 is out of bounds for (axis 0 with )?size 3" + with pytest.raises(IndexError, match=msg): + idx.take(np.array([1, -5])) + + @pytest.mark.parametrize("dtype", [np.int64, np.uint64]) + def test_take_fill_value_ints(self, dtype): + # see gh-12631 + idx = Index([1, 2, 3], dtype=dtype, name="xxx") + result = idx.take(np.array([1, 0, -1])) + expected = Index([2, 1, 3], dtype=dtype, name="xxx") + tm.assert_index_equal(result, expected) + + name = type(idx).__name__ + msg = f"Unable to fill values because {name} cannot contain NA" + + # fill_value=True + with pytest.raises(ValueError, match=msg): + idx.take(np.array([1, 0, -1]), fill_value=True) + + # allow_fill=False + result = idx.take(np.array([1, 0, -1]), allow_fill=False, fill_value=True) + expected = Index([2, 1, 3], dtype=dtype, name="xxx") + tm.assert_index_equal(result, expected) + + with pytest.raises(ValueError, match=msg): + idx.take(np.array([1, 0, -2]), fill_value=True) + with pytest.raises(ValueError, match=msg): + idx.take(np.array([1, 0, -5]), fill_value=True) + + msg = "index -5 is out of bounds for (axis 0 with )?size 3" + with pytest.raises(IndexError, match=msg): + idx.take(np.array([1, -5])) + + +class TestContains: + @pytest.mark.parametrize("dtype", [np.float64, np.int64, np.uint64]) + def test_contains_none(self, dtype): + # GH#35788 should return False, not raise TypeError + index = Index([0, 1, 2, 3, 4], dtype=dtype) + assert None not in index + + def test_contains_float64_nans(self): + index = Index([1.0, 2.0, np.nan], dtype=np.float64) + assert np.nan in index + + def test_contains_float64_not_nans(self): + index = Index([1.0, 2.0, np.nan], dtype=np.float64) + assert 1.0 in index + + +class TestSliceLocs: + @pytest.mark.parametrize("dtype", [int, float]) + def test_slice_locs(self, dtype): + index = Index(np.array([0, 1, 2, 5, 6, 7, 9, 10], dtype=dtype)) + n = len(index) + + assert index.slice_locs(start=2) == (2, n) + assert index.slice_locs(start=3) == (3, n) + assert index.slice_locs(3, 8) == (3, 6) + assert index.slice_locs(5, 10) == (3, n) + assert index.slice_locs(end=8) == (0, 6) + assert index.slice_locs(end=9) == (0, 7) + + # reversed + index2 = index[::-1] + assert index2.slice_locs(8, 2) == (2, 6) + assert index2.slice_locs(7, 3) == (2, 5) + + @pytest.mark.parametrize("dtype", [int, float]) + def test_slice_locs_float_locs(self, dtype): + index = Index(np.array([0, 1, 2, 5, 6, 7, 9, 10], dtype=dtype)) + n = len(index) + assert index.slice_locs(5.0, 10.0) == (3, n) + assert index.slice_locs(4.5, 10.5) == (3, 8) + + index2 = index[::-1] + assert index2.slice_locs(8.5, 1.5) == (2, 6) + assert index2.slice_locs(10.5, -1) == (0, n) + + @pytest.mark.parametrize("dtype", [int, float]) + def test_slice_locs_dup_numeric(self, dtype): + index = Index(np.array([10, 12, 12, 14], dtype=dtype)) + assert index.slice_locs(12, 12) == (1, 3) + assert index.slice_locs(11, 13) == (1, 3) + + index2 = index[::-1] + assert index2.slice_locs(12, 12) == (1, 3) + assert index2.slice_locs(13, 11) == (1, 3) + + def test_slice_locs_na(self): + index = Index([np.nan, 1, 2]) + assert index.slice_locs(1) == (1, 3) + assert index.slice_locs(np.nan) == (0, 3) + + index = Index([0, np.nan, np.nan, 1, 2]) + assert index.slice_locs(np.nan) == (1, 5) + + def test_slice_locs_na_raises(self): + index = Index([np.nan, 1, 2]) + with pytest.raises(KeyError, match=""): + index.slice_locs(start=1.5) + + with pytest.raises(KeyError, match=""): + index.slice_locs(end=1.5) + + +class TestGetSliceBounds: + @pytest.mark.parametrize("side, expected", [("left", 4), ("right", 5)]) + def test_get_slice_bounds_within(self, side, expected): + index = Index(range(6)) + result = index.get_slice_bound(4, side=side) + assert result == expected + + @pytest.mark.parametrize("side", ["left", "right"]) + @pytest.mark.parametrize("bound, expected", [(-1, 0), (10, 6)]) + def test_get_slice_bounds_outside(self, side, expected, bound): + index = Index(range(6)) + result = index.get_slice_bound(bound, side=side) + assert result == expected diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/numeric/test_join.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/numeric/test_join.py new file mode 100644 index 0000000000000000000000000000000000000000..918d5052167356b1d51018434c03e6682f828872 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/numeric/test_join.py @@ -0,0 +1,380 @@ +import numpy as np +import pytest + +import pandas._testing as tm +from pandas.core.indexes.api import Index + + +class TestJoinInt64Index: + def test_join_non_unique(self): + left = Index([4, 4, 3, 3]) + + joined, lidx, ridx = left.join(left, return_indexers=True) + + exp_joined = Index([4, 4, 4, 4, 3, 3, 3, 3]) + tm.assert_index_equal(joined, exp_joined) + + exp_lidx = np.array([0, 0, 1, 1, 2, 2, 3, 3], dtype=np.intp) + tm.assert_numpy_array_equal(lidx, exp_lidx) + + exp_ridx = np.array([0, 1, 0, 1, 2, 3, 2, 3], dtype=np.intp) + tm.assert_numpy_array_equal(ridx, exp_ridx) + + def test_join_inner(self): + index = Index(range(0, 20, 2), dtype=np.int64) + other = Index([7, 12, 25, 1, 2, 5], dtype=np.int64) + other_mono = Index([1, 2, 5, 7, 12, 25], dtype=np.int64) + + # not monotonic + res, lidx, ridx = index.join(other, how="inner", return_indexers=True) + + # no guarantee of sortedness, so sort for comparison purposes + ind = res.argsort() + res = res.take(ind) + lidx = lidx.take(ind) + ridx = ridx.take(ind) + + eres = Index([2, 12], dtype=np.int64) + elidx = np.array([1, 6], dtype=np.intp) + eridx = np.array([4, 1], dtype=np.intp) + + assert isinstance(res, Index) and res.dtype == np.int64 + tm.assert_index_equal(res, eres) + tm.assert_numpy_array_equal(lidx, elidx) + tm.assert_numpy_array_equal(ridx, eridx) + + # monotonic + res, lidx, ridx = index.join(other_mono, how="inner", return_indexers=True) + + res2 = index.intersection(other_mono) + tm.assert_index_equal(res, res2) + + elidx = np.array([1, 6], dtype=np.intp) + eridx = np.array([1, 4], dtype=np.intp) + assert isinstance(res, Index) and res.dtype == np.int64 + tm.assert_index_equal(res, eres) + tm.assert_numpy_array_equal(lidx, elidx) + tm.assert_numpy_array_equal(ridx, eridx) + + def test_join_left(self): + index = Index(range(0, 20, 2), dtype=np.int64) + other = Index([7, 12, 25, 1, 2, 5], dtype=np.int64) + other_mono = Index([1, 2, 5, 7, 12, 25], dtype=np.int64) + + # not monotonic + res, lidx, ridx = index.join(other, how="left", return_indexers=True) + eres = index + eridx = np.array([-1, 4, -1, -1, -1, -1, 1, -1, -1, -1], dtype=np.intp) + + assert isinstance(res, Index) and res.dtype == np.int64 + tm.assert_index_equal(res, eres) + assert lidx is None + tm.assert_numpy_array_equal(ridx, eridx) + + # monotonic + res, lidx, ridx = index.join(other_mono, how="left", return_indexers=True) + eridx = np.array([-1, 1, -1, -1, -1, -1, 4, -1, -1, -1], dtype=np.intp) + assert isinstance(res, Index) and res.dtype == np.int64 + tm.assert_index_equal(res, eres) + assert lidx is None + tm.assert_numpy_array_equal(ridx, eridx) + + # non-unique + idx = Index([1, 1, 2, 5]) + idx2 = Index([1, 2, 5, 7, 9]) + res, lidx, ridx = idx2.join(idx, how="left", return_indexers=True) + eres = Index([1, 1, 2, 5, 7, 9]) # 1 is in idx2, so it should be x2 + eridx = np.array([0, 1, 2, 3, -1, -1], dtype=np.intp) + elidx = np.array([0, 0, 1, 2, 3, 4], dtype=np.intp) + tm.assert_index_equal(res, eres) + tm.assert_numpy_array_equal(lidx, elidx) + tm.assert_numpy_array_equal(ridx, eridx) + + def test_join_right(self): + index = Index(range(0, 20, 2), dtype=np.int64) + other = Index([7, 12, 25, 1, 2, 5], dtype=np.int64) + other_mono = Index([1, 2, 5, 7, 12, 25], dtype=np.int64) + + # not monotonic + res, lidx, ridx = index.join(other, how="right", return_indexers=True) + eres = other + elidx = np.array([-1, 6, -1, -1, 1, -1], dtype=np.intp) + + assert isinstance(other, Index) and other.dtype == np.int64 + tm.assert_index_equal(res, eres) + tm.assert_numpy_array_equal(lidx, elidx) + assert ridx is None + + # monotonic + res, lidx, ridx = index.join(other_mono, how="right", return_indexers=True) + eres = other_mono + elidx = np.array([-1, 1, -1, -1, 6, -1], dtype=np.intp) + assert isinstance(other, Index) and other.dtype == np.int64 + tm.assert_index_equal(res, eres) + tm.assert_numpy_array_equal(lidx, elidx) + assert ridx is None + + # non-unique + idx = Index([1, 1, 2, 5]) + idx2 = Index([1, 2, 5, 7, 9]) + res, lidx, ridx = idx.join(idx2, how="right", return_indexers=True) + eres = Index([1, 1, 2, 5, 7, 9]) # 1 is in idx2, so it should be x2 + elidx = np.array([0, 1, 2, 3, -1, -1], dtype=np.intp) + eridx = np.array([0, 0, 1, 2, 3, 4], dtype=np.intp) + tm.assert_index_equal(res, eres) + tm.assert_numpy_array_equal(lidx, elidx) + tm.assert_numpy_array_equal(ridx, eridx) + + def test_join_non_int_index(self): + index = Index(range(0, 20, 2), dtype=np.int64) + other = Index([3, 6, 7, 8, 10], dtype=object) + + outer = index.join(other, how="outer") + outer2 = other.join(index, how="outer") + expected = Index([0, 2, 3, 4, 6, 7, 8, 10, 12, 14, 16, 18]) + tm.assert_index_equal(outer, outer2) + tm.assert_index_equal(outer, expected) + + inner = index.join(other, how="inner") + inner2 = other.join(index, how="inner") + expected = Index([6, 8, 10]) + tm.assert_index_equal(inner, inner2) + tm.assert_index_equal(inner, expected) + + left = index.join(other, how="left") + tm.assert_index_equal(left, index.astype(object)) + + left2 = other.join(index, how="left") + tm.assert_index_equal(left2, other) + + right = index.join(other, how="right") + tm.assert_index_equal(right, other) + + right2 = other.join(index, how="right") + tm.assert_index_equal(right2, index.astype(object)) + + def test_join_outer(self): + index = Index(range(0, 20, 2), dtype=np.int64) + other = Index([7, 12, 25, 1, 2, 5], dtype=np.int64) + other_mono = Index([1, 2, 5, 7, 12, 25], dtype=np.int64) + + # not monotonic + # guarantee of sortedness + res, lidx, ridx = index.join(other, how="outer", return_indexers=True) + noidx_res = index.join(other, how="outer") + tm.assert_index_equal(res, noidx_res) + + eres = Index([0, 1, 2, 4, 5, 6, 7, 8, 10, 12, 14, 16, 18, 25], dtype=np.int64) + elidx = np.array([0, -1, 1, 2, -1, 3, -1, 4, 5, 6, 7, 8, 9, -1], dtype=np.intp) + eridx = np.array( + [-1, 3, 4, -1, 5, -1, 0, -1, -1, 1, -1, -1, -1, 2], dtype=np.intp + ) + + assert isinstance(res, Index) and res.dtype == np.int64 + tm.assert_index_equal(res, eres) + tm.assert_numpy_array_equal(lidx, elidx) + tm.assert_numpy_array_equal(ridx, eridx) + + # monotonic + res, lidx, ridx = index.join(other_mono, how="outer", return_indexers=True) + noidx_res = index.join(other_mono, how="outer") + tm.assert_index_equal(res, noidx_res) + + elidx = np.array([0, -1, 1, 2, -1, 3, -1, 4, 5, 6, 7, 8, 9, -1], dtype=np.intp) + eridx = np.array( + [-1, 0, 1, -1, 2, -1, 3, -1, -1, 4, -1, -1, -1, 5], dtype=np.intp + ) + assert isinstance(res, Index) and res.dtype == np.int64 + tm.assert_index_equal(res, eres) + tm.assert_numpy_array_equal(lidx, elidx) + tm.assert_numpy_array_equal(ridx, eridx) + + +class TestJoinUInt64Index: + @pytest.fixture + def index_large(self): + # large values used in TestUInt64Index where no compat needed with int64/float64 + large = [2**63, 2**63 + 10, 2**63 + 15, 2**63 + 20, 2**63 + 25] + return Index(large, dtype=np.uint64) + + def test_join_inner(self, index_large): + other = Index(2**63 + np.array([7, 12, 25, 1, 2, 10], dtype="uint64")) + other_mono = Index(2**63 + np.array([1, 2, 7, 10, 12, 25], dtype="uint64")) + + # not monotonic + res, lidx, ridx = index_large.join(other, how="inner", return_indexers=True) + + # no guarantee of sortedness, so sort for comparison purposes + ind = res.argsort() + res = res.take(ind) + lidx = lidx.take(ind) + ridx = ridx.take(ind) + + eres = Index(2**63 + np.array([10, 25], dtype="uint64")) + elidx = np.array([1, 4], dtype=np.intp) + eridx = np.array([5, 2], dtype=np.intp) + + assert isinstance(res, Index) and res.dtype == np.uint64 + tm.assert_index_equal(res, eres) + tm.assert_numpy_array_equal(lidx, elidx) + tm.assert_numpy_array_equal(ridx, eridx) + + # monotonic + res, lidx, ridx = index_large.join( + other_mono, how="inner", return_indexers=True + ) + + res2 = index_large.intersection(other_mono) + tm.assert_index_equal(res, res2) + + elidx = np.array([1, 4], dtype=np.intp) + eridx = np.array([3, 5], dtype=np.intp) + + assert isinstance(res, Index) and res.dtype == np.uint64 + tm.assert_index_equal(res, eres) + tm.assert_numpy_array_equal(lidx, elidx) + tm.assert_numpy_array_equal(ridx, eridx) + + def test_join_left(self, index_large): + other = Index(2**63 + np.array([7, 12, 25, 1, 2, 10], dtype="uint64")) + other_mono = Index(2**63 + np.array([1, 2, 7, 10, 12, 25], dtype="uint64")) + + # not monotonic + res, lidx, ridx = index_large.join(other, how="left", return_indexers=True) + eres = index_large + eridx = np.array([-1, 5, -1, -1, 2], dtype=np.intp) + + assert isinstance(res, Index) and res.dtype == np.uint64 + tm.assert_index_equal(res, eres) + assert lidx is None + tm.assert_numpy_array_equal(ridx, eridx) + + # monotonic + res, lidx, ridx = index_large.join(other_mono, how="left", return_indexers=True) + eridx = np.array([-1, 3, -1, -1, 5], dtype=np.intp) + + assert isinstance(res, Index) and res.dtype == np.uint64 + tm.assert_index_equal(res, eres) + assert lidx is None + tm.assert_numpy_array_equal(ridx, eridx) + + # non-unique + idx = Index(2**63 + np.array([1, 1, 2, 5], dtype="uint64")) + idx2 = Index(2**63 + np.array([1, 2, 5, 7, 9], dtype="uint64")) + res, lidx, ridx = idx2.join(idx, how="left", return_indexers=True) + + # 1 is in idx2, so it should be x2 + eres = Index(2**63 + np.array([1, 1, 2, 5, 7, 9], dtype="uint64")) + eridx = np.array([0, 1, 2, 3, -1, -1], dtype=np.intp) + elidx = np.array([0, 0, 1, 2, 3, 4], dtype=np.intp) + + tm.assert_index_equal(res, eres) + tm.assert_numpy_array_equal(lidx, elidx) + tm.assert_numpy_array_equal(ridx, eridx) + + def test_join_right(self, index_large): + other = Index(2**63 + np.array([7, 12, 25, 1, 2, 10], dtype="uint64")) + other_mono = Index(2**63 + np.array([1, 2, 7, 10, 12, 25], dtype="uint64")) + + # not monotonic + res, lidx, ridx = index_large.join(other, how="right", return_indexers=True) + eres = other + elidx = np.array([-1, -1, 4, -1, -1, 1], dtype=np.intp) + + tm.assert_numpy_array_equal(lidx, elidx) + assert isinstance(other, Index) and other.dtype == np.uint64 + tm.assert_index_equal(res, eres) + assert ridx is None + + # monotonic + res, lidx, ridx = index_large.join( + other_mono, how="right", return_indexers=True + ) + eres = other_mono + elidx = np.array([-1, -1, -1, 1, -1, 4], dtype=np.intp) + + assert isinstance(other, Index) and other.dtype == np.uint64 + tm.assert_numpy_array_equal(lidx, elidx) + tm.assert_index_equal(res, eres) + assert ridx is None + + # non-unique + idx = Index(2**63 + np.array([1, 1, 2, 5], dtype="uint64")) + idx2 = Index(2**63 + np.array([1, 2, 5, 7, 9], dtype="uint64")) + res, lidx, ridx = idx.join(idx2, how="right", return_indexers=True) + + # 1 is in idx2, so it should be x2 + eres = Index(2**63 + np.array([1, 1, 2, 5, 7, 9], dtype="uint64")) + elidx = np.array([0, 1, 2, 3, -1, -1], dtype=np.intp) + eridx = np.array([0, 0, 1, 2, 3, 4], dtype=np.intp) + + tm.assert_index_equal(res, eres) + tm.assert_numpy_array_equal(lidx, elidx) + tm.assert_numpy_array_equal(ridx, eridx) + + def test_join_non_int_index(self, index_large): + other = Index( + 2**63 + np.array([1, 5, 7, 10, 20], dtype="uint64"), dtype=object + ) + + outer = index_large.join(other, how="outer") + outer2 = other.join(index_large, how="outer") + expected = Index( + 2**63 + np.array([0, 1, 5, 7, 10, 15, 20, 25], dtype="uint64") + ) + tm.assert_index_equal(outer, outer2) + tm.assert_index_equal(outer, expected) + + inner = index_large.join(other, how="inner") + inner2 = other.join(index_large, how="inner") + expected = Index(2**63 + np.array([10, 20], dtype="uint64")) + tm.assert_index_equal(inner, inner2) + tm.assert_index_equal(inner, expected) + + left = index_large.join(other, how="left") + tm.assert_index_equal(left, index_large.astype(object)) + + left2 = other.join(index_large, how="left") + tm.assert_index_equal(left2, other) + + right = index_large.join(other, how="right") + tm.assert_index_equal(right, other) + + right2 = other.join(index_large, how="right") + tm.assert_index_equal(right2, index_large.astype(object)) + + def test_join_outer(self, index_large): + other = Index(2**63 + np.array([7, 12, 25, 1, 2, 10], dtype="uint64")) + other_mono = Index(2**63 + np.array([1, 2, 7, 10, 12, 25], dtype="uint64")) + + # not monotonic + # guarantee of sortedness + res, lidx, ridx = index_large.join(other, how="outer", return_indexers=True) + noidx_res = index_large.join(other, how="outer") + tm.assert_index_equal(res, noidx_res) + + eres = Index( + 2**63 + np.array([0, 1, 2, 7, 10, 12, 15, 20, 25], dtype="uint64") + ) + elidx = np.array([0, -1, -1, -1, 1, -1, 2, 3, 4], dtype=np.intp) + eridx = np.array([-1, 3, 4, 0, 5, 1, -1, -1, 2], dtype=np.intp) + + assert isinstance(res, Index) and res.dtype == np.uint64 + tm.assert_index_equal(res, eres) + tm.assert_numpy_array_equal(lidx, elidx) + tm.assert_numpy_array_equal(ridx, eridx) + + # monotonic + res, lidx, ridx = index_large.join( + other_mono, how="outer", return_indexers=True + ) + noidx_res = index_large.join(other_mono, how="outer") + tm.assert_index_equal(res, noidx_res) + + elidx = np.array([0, -1, -1, -1, 1, -1, 2, 3, 4], dtype=np.intp) + eridx = np.array([-1, 0, 1, 2, 3, 4, -1, -1, 5], dtype=np.intp) + + assert isinstance(res, Index) and res.dtype == np.uint64 + tm.assert_index_equal(res, eres) + tm.assert_numpy_array_equal(lidx, elidx) + tm.assert_numpy_array_equal(ridx, eridx) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/numeric/test_numeric.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/numeric/test_numeric.py new file mode 100644 index 0000000000000000000000000000000000000000..4fd807e1827ddc4faf900f15dcefa18c08d4cd0b --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/numeric/test_numeric.py @@ -0,0 +1,553 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + Index, + Series, +) +import pandas._testing as tm + + +class TestFloatNumericIndex: + @pytest.fixture(params=[np.float64, np.float32]) + def dtype(self, request): + return request.param + + @pytest.fixture + def simple_index(self, dtype): + values = np.arange(5, dtype=dtype) + return Index(values) + + @pytest.fixture( + params=[ + [1.5, 2, 3, 4, 5], + [0.0, 2.5, 5.0, 7.5, 10.0], + [5, 4, 3, 2, 1.5], + [10.0, 7.5, 5.0, 2.5, 0.0], + ], + ids=["mixed", "float", "mixed_dec", "float_dec"], + ) + def index(self, request, dtype): + return Index(request.param, dtype=dtype) + + @pytest.fixture + def mixed_index(self, dtype): + return Index([1.5, 2, 3, 4, 5], dtype=dtype) + + @pytest.fixture + def float_index(self, dtype): + return Index([0.0, 2.5, 5.0, 7.5, 10.0], dtype=dtype) + + def test_repr_roundtrip(self, index): + tm.assert_index_equal(eval(repr(index)), index, exact=True) + + def check_coerce(self, a, b, is_float_index=True): + assert a.equals(b) + tm.assert_index_equal(a, b, exact=False) + if is_float_index: + assert isinstance(b, Index) + else: + assert type(b) is Index + + def test_constructor_from_list_no_dtype(self): + index = Index([1.5, 2.5, 3.5]) + assert index.dtype == np.float64 + + def test_constructor(self, dtype): + index_cls = Index + + # explicit construction + index = index_cls([1, 2, 3, 4, 5], dtype=dtype) + + assert isinstance(index, index_cls) + assert index.dtype == dtype + + expected = np.array([1, 2, 3, 4, 5], dtype=dtype) + tm.assert_numpy_array_equal(index.values, expected) + + index = index_cls(np.array([1, 2, 3, 4, 5]), dtype=dtype) + assert isinstance(index, index_cls) + assert index.dtype == dtype + + index = index_cls([1.0, 2, 3, 4, 5], dtype=dtype) + assert isinstance(index, index_cls) + assert index.dtype == dtype + + index = index_cls(np.array([1.0, 2, 3, 4, 5]), dtype=dtype) + assert isinstance(index, index_cls) + assert index.dtype == dtype + + index = index_cls([1.0, 2, 3, 4, 5], dtype=dtype) + assert isinstance(index, index_cls) + assert index.dtype == dtype + + index = index_cls(np.array([1.0, 2, 3, 4, 5]), dtype=dtype) + assert isinstance(index, index_cls) + assert index.dtype == dtype + + # nan handling + result = index_cls([np.nan, np.nan], dtype=dtype) + assert pd.isna(result.values).all() + + result = index_cls(np.array([np.nan]), dtype=dtype) + assert pd.isna(result.values).all() + + def test_constructor_invalid(self): + index_cls = Index + cls_name = index_cls.__name__ + # invalid + msg = ( + rf"{cls_name}\(\.\.\.\) must be called with a collection of " + r"some kind, 0\.0 was passed" + ) + with pytest.raises(TypeError, match=msg): + index_cls(0.0) + + def test_constructor_coerce(self, mixed_index, float_index): + self.check_coerce(mixed_index, Index([1.5, 2, 3, 4, 5])) + self.check_coerce(float_index, Index(np.arange(5) * 2.5)) + + result = Index(np.array(np.arange(5) * 2.5, dtype=object)) + assert result.dtype == object # as of 2.0 to match Series + self.check_coerce(float_index, result.astype("float64")) + + def test_constructor_explicit(self, mixed_index, float_index): + # these don't auto convert + self.check_coerce( + float_index, Index((np.arange(5) * 2.5), dtype=object), is_float_index=False + ) + self.check_coerce( + mixed_index, Index([1.5, 2, 3, 4, 5], dtype=object), is_float_index=False + ) + + def test_type_coercion_fail(self, any_int_numpy_dtype): + # see gh-15832 + msg = "Trying to coerce float values to integers" + with pytest.raises(ValueError, match=msg): + Index([1, 2, 3.5], dtype=any_int_numpy_dtype) + + def test_equals_numeric(self): + index_cls = Index + + idx = index_cls([1.0, 2.0]) + assert idx.equals(idx) + assert idx.identical(idx) + + idx2 = index_cls([1.0, 2.0]) + assert idx.equals(idx2) + + idx = index_cls([1.0, np.nan]) + assert idx.equals(idx) + assert idx.identical(idx) + + idx2 = index_cls([1.0, np.nan]) + assert idx.equals(idx2) + + @pytest.mark.parametrize( + "other", + ( + Index([1, 2], dtype=np.int64), + Index([1.0, 2.0], dtype=object), + Index([1, 2], dtype=object), + ), + ) + def test_equals_numeric_other_index_type(self, other): + idx = Index([1.0, 2.0]) + assert idx.equals(other) + assert other.equals(idx) + + @pytest.mark.parametrize( + "vals", + [ + pd.date_range("2016-01-01", periods=3), + pd.timedelta_range("1 Day", periods=3), + ], + ) + def test_lookups_datetimelike_values(self, vals, dtype): + # If we have datetime64 or timedelta64 values, make sure they are + # wrapped correctly GH#31163 + ser = Series(vals, index=range(3, 6)) + ser.index = ser.index.astype(dtype) + + expected = vals[1] + + result = ser[4.0] + assert isinstance(result, type(expected)) and result == expected + result = ser[4] + assert isinstance(result, type(expected)) and result == expected + + result = ser.loc[4.0] + assert isinstance(result, type(expected)) and result == expected + result = ser.loc[4] + assert isinstance(result, type(expected)) and result == expected + + result = ser.at[4.0] + assert isinstance(result, type(expected)) and result == expected + # GH#31329 .at[4] should cast to 4.0, matching .loc behavior + result = ser.at[4] + assert isinstance(result, type(expected)) and result == expected + + result = ser.iloc[1] + assert isinstance(result, type(expected)) and result == expected + + result = ser.iat[1] + assert isinstance(result, type(expected)) and result == expected + + def test_doesnt_contain_all_the_things(self): + idx = Index([np.nan]) + assert not idx.isin([0]).item() + assert not idx.isin([1]).item() + assert idx.isin([np.nan]).item() + + def test_nan_multiple_containment(self): + index_cls = Index + + idx = index_cls([1.0, np.nan]) + tm.assert_numpy_array_equal(idx.isin([1.0]), np.array([True, False])) + tm.assert_numpy_array_equal(idx.isin([2.0, np.pi]), np.array([False, False])) + tm.assert_numpy_array_equal(idx.isin([np.nan]), np.array([False, True])) + tm.assert_numpy_array_equal(idx.isin([1.0, np.nan]), np.array([True, True])) + idx = index_cls([1.0, 2.0]) + tm.assert_numpy_array_equal(idx.isin([np.nan]), np.array([False, False])) + + def test_fillna_float64(self): + index_cls = Index + # GH 11343 + idx = Index([1.0, np.nan, 3.0], dtype=float, name="x") + # can't downcast + exp = Index([1.0, 0.1, 3.0], name="x") + tm.assert_index_equal(idx.fillna(0.1), exp, exact=True) + + # downcast + exp = index_cls([1.0, 2.0, 3.0], name="x") + tm.assert_index_equal(idx.fillna(2), exp) + + # object + exp = Index([1.0, "obj", 3.0], name="x") + tm.assert_index_equal(idx.fillna("obj"), exp, exact=True) + + def test_logical_compat(self, simple_index): + idx = simple_index + assert idx.all() == idx.values.all() + assert idx.any() == idx.values.any() + + assert idx.all() == idx.to_series().all() + assert idx.any() == idx.to_series().any() + + +class TestNumericInt: + @pytest.fixture(params=[np.int64, np.int32, np.int16, np.int8, np.uint64]) + def dtype(self, request): + return request.param + + @pytest.fixture + def simple_index(self, dtype): + return Index(range(0, 20, 2), dtype=dtype) + + def test_is_monotonic(self): + index_cls = Index + + index = index_cls([1, 2, 3, 4]) + assert index.is_monotonic_increasing is True + assert index.is_monotonic_increasing is True + assert index._is_strictly_monotonic_increasing is True + assert index.is_monotonic_decreasing is False + assert index._is_strictly_monotonic_decreasing is False + + index = index_cls([4, 3, 2, 1]) + assert index.is_monotonic_increasing is False + assert index._is_strictly_monotonic_increasing is False + assert index._is_strictly_monotonic_decreasing is True + + index = index_cls([1]) + assert index.is_monotonic_increasing is True + assert index.is_monotonic_increasing is True + assert index.is_monotonic_decreasing is True + assert index._is_strictly_monotonic_increasing is True + assert index._is_strictly_monotonic_decreasing is True + + def test_is_strictly_monotonic(self): + index_cls = Index + + index = index_cls([1, 1, 2, 3]) + assert index.is_monotonic_increasing is True + assert index._is_strictly_monotonic_increasing is False + + index = index_cls([3, 2, 1, 1]) + assert index.is_monotonic_decreasing is True + assert index._is_strictly_monotonic_decreasing is False + + index = index_cls([1, 1]) + assert index.is_monotonic_increasing + assert index.is_monotonic_decreasing + assert not index._is_strictly_monotonic_increasing + assert not index._is_strictly_monotonic_decreasing + + def test_logical_compat(self, simple_index): + idx = simple_index + assert idx.all() == idx.values.all() + assert idx.any() == idx.values.any() + + def test_identical(self, simple_index, dtype): + index = simple_index + + idx = Index(index.copy()) + assert idx.identical(index) + + same_values_different_type = Index(idx, dtype=object) + assert not idx.identical(same_values_different_type) + + idx = index.astype(dtype=object) + idx = idx.rename("foo") + same_values = Index(idx, dtype=object) + assert same_values.identical(idx) + + assert not idx.identical(index) + assert Index(same_values, name="foo", dtype=object).identical(idx) + + assert not index.astype(dtype=object).identical(index.astype(dtype=dtype)) + + def test_cant_or_shouldnt_cast(self, dtype): + msg = r"invalid literal for int\(\) with base 10: 'foo'" + + # can't + data = ["foo", "bar", "baz"] + with pytest.raises(ValueError, match=msg): + Index(data, dtype=dtype) + + def test_view_index(self, simple_index): + index = simple_index + msg = "Passing a type in .*Index.view is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + index.view(Index) + + def test_prevent_casting(self, simple_index): + index = simple_index + result = index.astype("O") + assert result.dtype == np.object_ + + +class TestIntNumericIndex: + @pytest.fixture(params=[np.int64, np.int32, np.int16, np.int8]) + def dtype(self, request): + return request.param + + def test_constructor_from_list_no_dtype(self): + index = Index([1, 2, 3]) + assert index.dtype == np.int64 + + def test_constructor(self, dtype): + index_cls = Index + + # scalar raise Exception + msg = ( + rf"{index_cls.__name__}\(\.\.\.\) must be called with a collection of some " + "kind, 5 was passed" + ) + with pytest.raises(TypeError, match=msg): + index_cls(5) + + # copy + # pass list, coerce fine + index = index_cls([-5, 0, 1, 2], dtype=dtype) + arr = index.values.copy() + new_index = index_cls(arr, copy=True) + tm.assert_index_equal(new_index, index, exact=True) + val = int(arr[0]) + 3000 + + # this should not change index + if dtype != np.int8: + # NEP 50 won't allow assignment that would overflow + arr[0] = val + assert new_index[0] != val + + if dtype == np.int64: + # pass list, coerce fine + index = index_cls([-5, 0, 1, 2], dtype=dtype) + expected = Index([-5, 0, 1, 2], dtype=dtype) + tm.assert_index_equal(index, expected) + + # from iterable + index = index_cls(iter([-5, 0, 1, 2]), dtype=dtype) + expected = index_cls([-5, 0, 1, 2], dtype=dtype) + tm.assert_index_equal(index, expected, exact=True) + + # interpret list-like + expected = index_cls([5, 0], dtype=dtype) + for cls in [Index, index_cls]: + for idx in [ + cls([5, 0], dtype=dtype), + cls(np.array([5, 0]), dtype=dtype), + cls(Series([5, 0]), dtype=dtype), + ]: + tm.assert_index_equal(idx, expected) + + def test_constructor_corner(self, dtype): + index_cls = Index + + arr = np.array([1, 2, 3, 4], dtype=object) + + index = index_cls(arr, dtype=dtype) + assert index.values.dtype == index.dtype + if dtype == np.int64: + without_dtype = Index(arr) + # as of 2.0 we do not infer a dtype when we get an object-dtype + # ndarray of numbers, matching Series behavior + assert without_dtype.dtype == object + + tm.assert_index_equal(index, without_dtype.astype(np.int64)) + + # preventing casting + arr = np.array([1, "2", 3, "4"], dtype=object) + msg = "Trying to coerce float values to integers" + with pytest.raises(ValueError, match=msg): + index_cls(arr, dtype=dtype) + + def test_constructor_coercion_signed_to_unsigned( + self, + any_unsigned_int_numpy_dtype, + ): + # see gh-15832 + msg = "|".join( + [ + "Trying to coerce negative values to unsigned integers", + "The elements provided in the data cannot all be casted", + ] + ) + with pytest.raises(OverflowError, match=msg): + Index([-1], dtype=any_unsigned_int_numpy_dtype) + + def test_constructor_np_signed(self, any_signed_int_numpy_dtype): + # GH#47475 + scalar = np.dtype(any_signed_int_numpy_dtype).type(1) + result = Index([scalar]) + expected = Index([1], dtype=any_signed_int_numpy_dtype) + tm.assert_index_equal(result, expected, exact=True) + + def test_constructor_np_unsigned(self, any_unsigned_int_numpy_dtype): + # GH#47475 + scalar = np.dtype(any_unsigned_int_numpy_dtype).type(1) + result = Index([scalar]) + expected = Index([1], dtype=any_unsigned_int_numpy_dtype) + tm.assert_index_equal(result, expected, exact=True) + + def test_coerce_list(self): + # coerce things + arr = Index([1, 2, 3, 4]) + assert isinstance(arr, Index) + + # but not if explicit dtype passed + arr = Index([1, 2, 3, 4], dtype=object) + assert type(arr) is Index + + +class TestFloat16Index: + # float 16 indexes not supported + # GH 49535 + def test_constructor(self): + index_cls = Index + dtype = np.float16 + + msg = "float16 indexes are not supported" + + # explicit construction + with pytest.raises(NotImplementedError, match=msg): + index_cls([1, 2, 3, 4, 5], dtype=dtype) + + with pytest.raises(NotImplementedError, match=msg): + index_cls(np.array([1, 2, 3, 4, 5]), dtype=dtype) + + with pytest.raises(NotImplementedError, match=msg): + index_cls([1.0, 2, 3, 4, 5], dtype=dtype) + + with pytest.raises(NotImplementedError, match=msg): + index_cls(np.array([1.0, 2, 3, 4, 5]), dtype=dtype) + + with pytest.raises(NotImplementedError, match=msg): + index_cls([1.0, 2, 3, 4, 5], dtype=dtype) + + with pytest.raises(NotImplementedError, match=msg): + index_cls(np.array([1.0, 2, 3, 4, 5]), dtype=dtype) + + # nan handling + with pytest.raises(NotImplementedError, match=msg): + index_cls([np.nan, np.nan], dtype=dtype) + + with pytest.raises(NotImplementedError, match=msg): + index_cls(np.array([np.nan]), dtype=dtype) + + +@pytest.mark.parametrize( + "box", + [list, lambda x: np.array(x, dtype=object), lambda x: Index(x, dtype=object)], +) +def test_uint_index_does_not_convert_to_float64(box): + # https://github.com/pandas-dev/pandas/issues/28279 + # https://github.com/pandas-dev/pandas/issues/28023 + series = Series( + [0, 1, 2, 3, 4, 5], + index=[ + 7606741985629028552, + 17876870360202815256, + 17876870360202815256, + 13106359306506049338, + 8991270399732411471, + 8991270399732411472, + ], + ) + + result = series.loc[box([7606741985629028552, 17876870360202815256])] + + expected = Index( + [7606741985629028552, 17876870360202815256, 17876870360202815256], + dtype="uint64", + ) + tm.assert_index_equal(result.index, expected) + + tm.assert_equal(result, series.iloc[:3]) + + +def test_float64_index_equals(): + # https://github.com/pandas-dev/pandas/issues/35217 + float_index = Index([1.0, 2, 3]) + string_index = Index(["1", "2", "3"]) + + result = float_index.equals(string_index) + assert result is False + + result = string_index.equals(float_index) + assert result is False + + +def test_map_dtype_inference_unsigned_to_signed(): + # GH#44609 cases where we don't retain dtype + idx = Index([1, 2, 3], dtype=np.uint64) + result = idx.map(lambda x: -x) + expected = Index([-1, -2, -3], dtype=np.int64) + tm.assert_index_equal(result, expected) + + +def test_map_dtype_inference_overflows(): + # GH#44609 case where we have to upcast + idx = Index(np.array([1, 2, 3], dtype=np.int8)) + result = idx.map(lambda x: x * 1000) + # TODO: we could plausibly try to infer down to int16 here + expected = Index([1000, 2000, 3000], dtype=np.int64) + tm.assert_index_equal(result, expected) + + +def test_view_to_datetimelike(): + # GH#55710 + idx = Index([1, 2, 3]) + res = idx.view("m8[s]") + expected = pd.TimedeltaIndex(idx.values.view("m8[s]")) + tm.assert_index_equal(res, expected) + + res2 = idx.view("m8[D]") + expected2 = idx.values.view("m8[D]") + tm.assert_numpy_array_equal(res2, expected2) + + res3 = idx.view("M8[h]") + expected3 = idx.values.view("M8[h]") + tm.assert_numpy_array_equal(res3, expected3) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/numeric/test_setops.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/numeric/test_setops.py new file mode 100644 index 0000000000000000000000000000000000000000..376b51dd98bb1b1c7c6c8a67914bc72f6c6c588d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/numeric/test_setops.py @@ -0,0 +1,168 @@ +from datetime import ( + datetime, + timedelta, +) + +import numpy as np +import pytest + +import pandas._testing as tm +from pandas.core.indexes.api import ( + Index, + RangeIndex, +) + + +@pytest.fixture +def index_large(): + # large values used in TestUInt64Index where no compat needed with int64/float64 + large = [2**63, 2**63 + 10, 2**63 + 15, 2**63 + 20, 2**63 + 25] + return Index(large, dtype=np.uint64) + + +class TestSetOps: + @pytest.mark.parametrize("dtype", ["f8", "u8", "i8"]) + def test_union_non_numeric(self, dtype): + # corner case, non-numeric + index = Index(np.arange(5, dtype=dtype), dtype=dtype) + assert index.dtype == dtype + + other = Index([datetime.now() + timedelta(i) for i in range(4)], dtype=object) + result = index.union(other) + expected = Index(np.concatenate((index, other))) + tm.assert_index_equal(result, expected) + + result = other.union(index) + expected = Index(np.concatenate((other, index))) + tm.assert_index_equal(result, expected) + + def test_intersection(self): + index = Index(range(5), dtype=np.int64) + + other = Index([1, 2, 3, 4, 5]) + result = index.intersection(other) + expected = Index(np.sort(np.intersect1d(index.values, other.values))) + tm.assert_index_equal(result, expected) + + result = other.intersection(index) + expected = Index( + np.sort(np.asarray(np.intersect1d(index.values, other.values))) + ) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("dtype", ["int64", "uint64"]) + def test_int_float_union_dtype(self, dtype): + # https://github.com/pandas-dev/pandas/issues/26778 + # [u]int | float -> float + index = Index([0, 2, 3], dtype=dtype) + other = Index([0.5, 1.5], dtype=np.float64) + expected = Index([0.0, 0.5, 1.5, 2.0, 3.0], dtype=np.float64) + result = index.union(other) + tm.assert_index_equal(result, expected) + + result = other.union(index) + tm.assert_index_equal(result, expected) + + def test_range_float_union_dtype(self): + # https://github.com/pandas-dev/pandas/issues/26778 + index = RangeIndex(start=0, stop=3) + other = Index([0.5, 1.5], dtype=np.float64) + result = index.union(other) + expected = Index([0.0, 0.5, 1, 1.5, 2.0], dtype=np.float64) + tm.assert_index_equal(result, expected) + + result = other.union(index) + tm.assert_index_equal(result, expected) + + def test_range_uint64_union_dtype(self): + # https://github.com/pandas-dev/pandas/issues/26778 + index = RangeIndex(start=0, stop=3) + other = Index([0, 10], dtype=np.uint64) + result = index.union(other) + expected = Index([0, 1, 2, 10], dtype=object) + tm.assert_index_equal(result, expected) + + result = other.union(index) + tm.assert_index_equal(result, expected) + + def test_float64_index_difference(self): + # https://github.com/pandas-dev/pandas/issues/35217 + float_index = Index([1.0, 2, 3]) + string_index = Index(["1", "2", "3"]) + + result = float_index.difference(string_index) + tm.assert_index_equal(result, float_index) + + result = string_index.difference(float_index) + tm.assert_index_equal(result, string_index) + + def test_intersection_uint64_outside_int64_range(self, index_large): + other = Index([2**63, 2**63 + 5, 2**63 + 10, 2**63 + 15, 2**63 + 20]) + result = index_large.intersection(other) + expected = Index(np.sort(np.intersect1d(index_large.values, other.values))) + tm.assert_index_equal(result, expected) + + result = other.intersection(index_large) + expected = Index( + np.sort(np.asarray(np.intersect1d(index_large.values, other.values))) + ) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "index2,keeps_name", + [ + (Index([4, 7, 6, 5, 3], name="index"), True), + (Index([4, 7, 6, 5, 3], name="other"), False), + ], + ) + def test_intersection_monotonic(self, index2, keeps_name, sort): + index1 = Index([5, 3, 2, 4, 1], name="index") + expected = Index([5, 3, 4]) + + if keeps_name: + expected.name = "index" + + result = index1.intersection(index2, sort=sort) + if sort is None: + expected = expected.sort_values() + tm.assert_index_equal(result, expected) + + def test_symmetric_difference(self, sort): + # smoke + index1 = Index([5, 2, 3, 4], name="index1") + index2 = Index([2, 3, 4, 1]) + result = index1.symmetric_difference(index2, sort=sort) + expected = Index([5, 1]) + if sort is not None: + tm.assert_index_equal(result, expected) + else: + tm.assert_index_equal(result, expected.sort_values()) + assert result.name is None + if sort is None: + expected = expected.sort_values() + tm.assert_index_equal(result, expected) + + +class TestSetOpsSort: + @pytest.mark.parametrize("slice_", [slice(None), slice(0)]) + def test_union_sort_other_special(self, slice_): + # https://github.com/pandas-dev/pandas/issues/24959 + + idx = Index([1, 0, 2]) + # default, sort=None + other = idx[slice_] + tm.assert_index_equal(idx.union(other), idx) + tm.assert_index_equal(other.union(idx), idx) + + # sort=False + tm.assert_index_equal(idx.union(other, sort=False), idx) + + @pytest.mark.parametrize("slice_", [slice(None), slice(0)]) + def test_union_sort_special_true(self, slice_): + idx = Index([1, 0, 2]) + # default, sort=None + other = idx[slice_] + + result = idx.union(other, sort=True) + expected = Index([0, 1, 2]) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/object/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/object/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/object/test_astype.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/object/test_astype.py new file mode 100644 index 0000000000000000000000000000000000000000..7e0de138aacfbf89ef6800669383e39f466104b3 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/object/test_astype.py @@ -0,0 +1,15 @@ +import pytest + +from pandas import ( + Index, + NaT, +) + + +def test_astype_invalid_nas_to_tdt64_raises(): + # GH#45722 don't cast np.datetime64 NaTs to timedelta64 NaT + idx = Index([NaT.asm8] * 2, dtype=object) + + msg = r"Invalid type for timedelta scalar: " + with pytest.raises(TypeError, match=msg): + idx.astype("m8[ns]") diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/object/test_indexing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/object/test_indexing.py new file mode 100644 index 0000000000000000000000000000000000000000..42ef7e7a96f5e0418757fed6a5ae2115ea02229b --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/object/test_indexing.py @@ -0,0 +1,159 @@ +from decimal import Decimal + +import numpy as np +import pytest + +from pandas._libs.missing import is_matching_na + +from pandas import Index +import pandas._testing as tm + + +class TestGetIndexer: + @pytest.mark.parametrize( + "method,expected", + [ + ("pad", np.array([-1, 0, 1, 1], dtype=np.intp)), + ("backfill", np.array([0, 0, 1, -1], dtype=np.intp)), + ], + ) + def test_get_indexer_strings(self, method, expected): + expected = np.array(expected, dtype=np.intp) + index = Index(["b", "c"], dtype=object) + actual = index.get_indexer(["a", "b", "c", "d"], method=method) + + tm.assert_numpy_array_equal(actual, expected) + + def test_get_indexer_strings_raises(self): + index = Index(["b", "c"], dtype=object) + + msg = "|".join( + [ + "operation 'sub' not supported for dtype 'str'", + r"unsupported operand type\(s\) for -: 'str' and 'str'", + ] + ) + with pytest.raises(TypeError, match=msg): + index.get_indexer(["a", "b", "c", "d"], method="nearest") + + with pytest.raises(TypeError, match=msg): + index.get_indexer(["a", "b", "c", "d"], method="pad", tolerance=2) + + with pytest.raises(TypeError, match=msg): + index.get_indexer( + ["a", "b", "c", "d"], method="pad", tolerance=[2, 2, 2, 2] + ) + + def test_get_indexer_with_NA_values( + self, unique_nulls_fixture, unique_nulls_fixture2 + ): + # GH#22332 + # check pairwise, that no pair of na values + # is mangled + if unique_nulls_fixture is unique_nulls_fixture2: + return # skip it, values are not unique + arr = np.array([unique_nulls_fixture, unique_nulls_fixture2], dtype=object) + index = Index(arr, dtype=object) + result = index.get_indexer( + Index( + [unique_nulls_fixture, unique_nulls_fixture2, "Unknown"], dtype=object + ) + ) + expected = np.array([0, 1, -1], dtype=np.intp) + tm.assert_numpy_array_equal(result, expected) + + def test_get_indexer_infer_string_missing_values(self): + # ensure the passed list is not cast to string but to object so that + # the None value is matched in the index + # https://github.com/pandas-dev/pandas/issues/55834 + idx = Index(["a", "b", None], dtype="object") + result = idx.get_indexer([None, "x"]) + expected = np.array([2, -1], dtype=np.intp) + tm.assert_numpy_array_equal(result, expected) + + +class TestGetIndexerNonUnique: + def test_get_indexer_non_unique_nas(self, nulls_fixture): + # even though this isn't non-unique, this should still work + index = Index(["a", "b", nulls_fixture], dtype=object) + indexer, missing = index.get_indexer_non_unique([nulls_fixture]) + + expected_indexer = np.array([2], dtype=np.intp) + expected_missing = np.array([], dtype=np.intp) + tm.assert_numpy_array_equal(indexer, expected_indexer) + tm.assert_numpy_array_equal(missing, expected_missing) + + # actually non-unique + index = Index(["a", nulls_fixture, "b", nulls_fixture], dtype=object) + indexer, missing = index.get_indexer_non_unique([nulls_fixture]) + + expected_indexer = np.array([1, 3], dtype=np.intp) + tm.assert_numpy_array_equal(indexer, expected_indexer) + tm.assert_numpy_array_equal(missing, expected_missing) + + # matching-but-not-identical nans + if is_matching_na(nulls_fixture, float("NaN")): + index = Index(["a", float("NaN"), "b", float("NaN")], dtype=object) + match_but_not_identical = True + elif is_matching_na(nulls_fixture, Decimal("NaN")): + index = Index(["a", Decimal("NaN"), "b", Decimal("NaN")], dtype=object) + match_but_not_identical = True + else: + match_but_not_identical = False + + if match_but_not_identical: + indexer, missing = index.get_indexer_non_unique([nulls_fixture]) + + expected_indexer = np.array([1, 3], dtype=np.intp) + tm.assert_numpy_array_equal(indexer, expected_indexer) + tm.assert_numpy_array_equal(missing, expected_missing) + + @pytest.mark.filterwarnings("ignore:elementwise comp:DeprecationWarning") + def test_get_indexer_non_unique_np_nats(self, np_nat_fixture, np_nat_fixture2): + expected_missing = np.array([], dtype=np.intp) + # matching-but-not-identical nats + if is_matching_na(np_nat_fixture, np_nat_fixture2): + # ensure nats are different objects + index = Index( + np.array( + ["2021-10-02", np_nat_fixture.copy(), np_nat_fixture2.copy()], + dtype=object, + ), + dtype=object, + ) + # pass as index to prevent target from being casted to DatetimeIndex + indexer, missing = index.get_indexer_non_unique( + Index([np_nat_fixture], dtype=object) + ) + expected_indexer = np.array([1, 2], dtype=np.intp) + tm.assert_numpy_array_equal(indexer, expected_indexer) + tm.assert_numpy_array_equal(missing, expected_missing) + # dt64nat vs td64nat + else: + try: + np_nat_fixture == np_nat_fixture2 + except (TypeError, OverflowError): + # Numpy will raise on uncomparable types, like + # np.datetime64('NaT', 'Y') and np.datetime64('NaT', 'ps') + # https://github.com/numpy/numpy/issues/22762 + return + index = Index( + np.array( + [ + "2021-10-02", + np_nat_fixture, + np_nat_fixture2, + np_nat_fixture, + np_nat_fixture2, + ], + dtype=object, + ), + dtype=object, + ) + # pass as index to prevent target from being casted to DatetimeIndex + indexer, missing = index.get_indexer_non_unique( + Index([np_nat_fixture], dtype=object) + ) + expected_indexer = np.array([1, 3], dtype=np.intp) + tm.assert_numpy_array_equal(indexer, expected_indexer) + tm.assert_numpy_array_equal(missing, expected_missing) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/test_asfreq.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/test_asfreq.py new file mode 100644 index 0000000000000000000000000000000000000000..865bae69d91c7960e286646e22d0fa2646333303 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/test_asfreq.py @@ -0,0 +1,189 @@ +import re + +import pytest + +from pandas import ( + PeriodIndex, + Series, + period_range, +) +import pandas._testing as tm + +from pandas.tseries import offsets + + +class TestPeriodIndex: + def test_asfreq(self): + pi1 = period_range(freq="Y", start="1/1/2001", end="1/1/2001") + pi2 = period_range(freq="Q", start="1/1/2001", end="1/1/2001") + pi3 = period_range(freq="M", start="1/1/2001", end="1/1/2001") + pi4 = period_range(freq="D", start="1/1/2001", end="1/1/2001") + pi5 = period_range(freq="h", start="1/1/2001", end="1/1/2001 00:00") + pi6 = period_range(freq="Min", start="1/1/2001", end="1/1/2001 00:00") + pi7 = period_range(freq="s", start="1/1/2001", end="1/1/2001 00:00:00") + + assert pi1.asfreq("Q", "s") == pi2 + assert pi1.asfreq("Q", "s") == pi2 + assert pi1.asfreq("M", "start") == pi3 + assert pi1.asfreq("D", "StarT") == pi4 + assert pi1.asfreq("h", "beGIN") == pi5 + assert pi1.asfreq("Min", "s") == pi6 + assert pi1.asfreq("s", "s") == pi7 + + assert pi2.asfreq("Y", "s") == pi1 + assert pi2.asfreq("M", "s") == pi3 + assert pi2.asfreq("D", "s") == pi4 + assert pi2.asfreq("h", "s") == pi5 + assert pi2.asfreq("Min", "s") == pi6 + assert pi2.asfreq("s", "s") == pi7 + + assert pi3.asfreq("Y", "s") == pi1 + assert pi3.asfreq("Q", "s") == pi2 + assert pi3.asfreq("D", "s") == pi4 + assert pi3.asfreq("h", "s") == pi5 + assert pi3.asfreq("Min", "s") == pi6 + assert pi3.asfreq("s", "s") == pi7 + + assert pi4.asfreq("Y", "s") == pi1 + assert pi4.asfreq("Q", "s") == pi2 + assert pi4.asfreq("M", "s") == pi3 + assert pi4.asfreq("h", "s") == pi5 + assert pi4.asfreq("Min", "s") == pi6 + assert pi4.asfreq("s", "s") == pi7 + + assert pi5.asfreq("Y", "s") == pi1 + assert pi5.asfreq("Q", "s") == pi2 + assert pi5.asfreq("M", "s") == pi3 + assert pi5.asfreq("D", "s") == pi4 + assert pi5.asfreq("Min", "s") == pi6 + assert pi5.asfreq("s", "s") == pi7 + + assert pi6.asfreq("Y", "s") == pi1 + assert pi6.asfreq("Q", "s") == pi2 + assert pi6.asfreq("M", "s") == pi3 + assert pi6.asfreq("D", "s") == pi4 + assert pi6.asfreq("h", "s") == pi5 + assert pi6.asfreq("s", "s") == pi7 + + assert pi7.asfreq("Y", "s") == pi1 + assert pi7.asfreq("Q", "s") == pi2 + assert pi7.asfreq("M", "s") == pi3 + assert pi7.asfreq("D", "s") == pi4 + assert pi7.asfreq("h", "s") == pi5 + assert pi7.asfreq("Min", "s") == pi6 + + msg = "How must be one of S or E" + with pytest.raises(ValueError, match=msg): + pi7.asfreq("T", "foo") + result1 = pi1.asfreq("3M") + result2 = pi1.asfreq("M") + expected = period_range(freq="M", start="2001-12", end="2001-12") + tm.assert_numpy_array_equal(result1.asi8, expected.asi8) + assert result1.freqstr == "3M" + tm.assert_numpy_array_equal(result2.asi8, expected.asi8) + assert result2.freqstr == "M" + + def test_asfreq_nat(self): + idx = PeriodIndex(["2011-01", "2011-02", "NaT", "2011-04"], freq="M") + result = idx.asfreq(freq="Q") + expected = PeriodIndex(["2011Q1", "2011Q1", "NaT", "2011Q2"], freq="Q") + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("freq", ["D", "3D"]) + def test_asfreq_mult_pi(self, freq): + pi = PeriodIndex(["2001-01", "2001-02", "NaT", "2001-03"], freq="2M") + + result = pi.asfreq(freq) + exp = PeriodIndex(["2001-02-28", "2001-03-31", "NaT", "2001-04-30"], freq=freq) + tm.assert_index_equal(result, exp) + assert result.freq == exp.freq + + result = pi.asfreq(freq, how="S") + exp = PeriodIndex(["2001-01-01", "2001-02-01", "NaT", "2001-03-01"], freq=freq) + tm.assert_index_equal(result, exp) + assert result.freq == exp.freq + + def test_asfreq_combined_pi(self): + pi = PeriodIndex(["2001-01-01 00:00", "2001-01-02 02:00", "NaT"], freq="h") + exp = PeriodIndex(["2001-01-01 00:00", "2001-01-02 02:00", "NaT"], freq="25h") + for freq, how in zip(["1D1h", "1h1D"], ["S", "E"]): + result = pi.asfreq(freq, how=how) + tm.assert_index_equal(result, exp) + assert result.freq == exp.freq + + for freq in ["1D1h", "1h1D"]: + pi = PeriodIndex(["2001-01-01 00:00", "2001-01-02 02:00", "NaT"], freq=freq) + result = pi.asfreq("h") + exp = PeriodIndex(["2001-01-02 00:00", "2001-01-03 02:00", "NaT"], freq="h") + tm.assert_index_equal(result, exp) + assert result.freq == exp.freq + + pi = PeriodIndex(["2001-01-01 00:00", "2001-01-02 02:00", "NaT"], freq=freq) + result = pi.asfreq("h", how="S") + exp = PeriodIndex(["2001-01-01 00:00", "2001-01-02 02:00", "NaT"], freq="h") + tm.assert_index_equal(result, exp) + assert result.freq == exp.freq + + def test_astype_asfreq(self): + pi1 = PeriodIndex(["2011-01-01", "2011-02-01", "2011-03-01"], freq="D") + exp = PeriodIndex(["2011-01", "2011-02", "2011-03"], freq="M") + tm.assert_index_equal(pi1.asfreq("M"), exp) + tm.assert_index_equal(pi1.astype("period[M]"), exp) + + exp = PeriodIndex(["2011-01", "2011-02", "2011-03"], freq="3M") + tm.assert_index_equal(pi1.asfreq("3M"), exp) + tm.assert_index_equal(pi1.astype("period[3M]"), exp) + + def test_asfreq_with_different_n(self): + ser = Series([1, 2], index=PeriodIndex(["2020-01", "2020-03"], freq="2M")) + result = ser.asfreq("M") + + excepted = Series([1, 2], index=PeriodIndex(["2020-02", "2020-04"], freq="M")) + tm.assert_series_equal(result, excepted) + + @pytest.mark.parametrize( + "freq", + [ + "2BMS", + "2YS-MAR", + "2bh", + ], + ) + def test_pi_asfreq_not_supported_frequency(self, freq): + # GH#55785 + msg = f"{freq[1:]} is not supported as period frequency" + + pi = PeriodIndex(["2020-01-01", "2021-01-01"], freq="M") + with pytest.raises(ValueError, match=msg): + pi.asfreq(freq=freq) + + @pytest.mark.parametrize( + "freq", + [ + "2BME", + "2YE-MAR", + "2QE", + ], + ) + def test_pi_asfreq_invalid_frequency(self, freq): + # GH#55785 + msg = f"Invalid frequency: {freq}" + + pi = PeriodIndex(["2020-01-01", "2021-01-01"], freq="M") + with pytest.raises(ValueError, match=msg): + pi.asfreq(freq=freq) + + @pytest.mark.parametrize( + "freq", + [ + offsets.MonthBegin(2), + offsets.BusinessMonthEnd(2), + ], + ) + def test_pi_asfreq_invalid_baseoffset(self, freq): + # GH#56945 + msg = re.escape(f"{freq} is not supported as period frequency") + + pi = PeriodIndex(["2020-01-01", "2021-01-01"], freq="M") + with pytest.raises(ValueError, match=msg): + pi.asfreq(freq=freq) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/test_astype.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/test_astype.py new file mode 100644 index 0000000000000000000000000000000000000000..af3c2667f51b4387c5d5c089f186952deec68af1 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/test_astype.py @@ -0,0 +1,156 @@ +import numpy as np +import pytest + +from pandas import ( + CategoricalIndex, + DatetimeIndex, + Index, + NaT, + Period, + PeriodIndex, + period_range, +) +import pandas._testing as tm + + +class TestPeriodIndexAsType: + @pytest.mark.parametrize("dtype", [float, "timedelta64", "timedelta64[ns]"]) + def test_astype_raises(self, dtype): + # GH#13149, GH#13209 + idx = PeriodIndex(["2016-05-16", "NaT", NaT, np.nan], freq="D") + msg = "Cannot cast PeriodIndex to dtype" + with pytest.raises(TypeError, match=msg): + idx.astype(dtype) + + def test_astype_conversion(self, using_infer_string): + # GH#13149, GH#13209 + idx = PeriodIndex(["2016-05-16", "NaT", NaT, np.nan], freq="D", name="idx") + + result = idx.astype(object) + expected = Index( + [Period("2016-05-16", freq="D")] + [Period(NaT, freq="D")] * 3, + dtype="object", + name="idx", + ) + tm.assert_index_equal(result, expected) + + result = idx.astype(np.int64) + expected = Index( + [16937] + [-9223372036854775808] * 3, dtype=np.int64, name="idx" + ) + tm.assert_index_equal(result, expected) + + result = idx.astype(str) + if using_infer_string: + expected = Index( + [str(x) if x is not NaT else None for x in idx], name="idx", dtype="str" + ) + else: + expected = Index([str(x) for x in idx], name="idx", dtype=object) + tm.assert_index_equal(result, expected) + + idx = period_range("1990", "2009", freq="Y", name="idx") + result = idx.astype("i8") + tm.assert_index_equal(result, Index(idx.asi8, name="idx")) + tm.assert_numpy_array_equal(result.values, idx.asi8) + + def test_astype_uint(self): + arr = period_range("2000", periods=2, name="idx") + + with pytest.raises(TypeError, match=r"Do obj.astype\('int64'\)"): + arr.astype("uint64") + with pytest.raises(TypeError, match=r"Do obj.astype\('int64'\)"): + arr.astype("uint32") + + def test_astype_object(self): + idx = PeriodIndex([], freq="M") + + exp = np.array([], dtype=object) + tm.assert_numpy_array_equal(idx.astype(object).values, exp) + tm.assert_numpy_array_equal(idx._mpl_repr(), exp) + + idx = PeriodIndex(["2011-01", NaT], freq="M") + + exp = np.array([Period("2011-01", freq="M"), NaT], dtype=object) + tm.assert_numpy_array_equal(idx.astype(object).values, exp) + tm.assert_numpy_array_equal(idx._mpl_repr(), exp) + + exp = np.array([Period("2011-01-01", freq="D"), NaT], dtype=object) + idx = PeriodIndex(["2011-01-01", NaT], freq="D") + tm.assert_numpy_array_equal(idx.astype(object).values, exp) + tm.assert_numpy_array_equal(idx._mpl_repr(), exp) + + # TODO: de-duplicate this version (from test_ops) with the one above + # (from test_period) + def test_astype_object2(self): + idx = period_range(start="2013-01-01", periods=4, freq="M", name="idx") + expected_list = [ + Period("2013-01-31", freq="M"), + Period("2013-02-28", freq="M"), + Period("2013-03-31", freq="M"), + Period("2013-04-30", freq="M"), + ] + expected = Index(expected_list, dtype=object, name="idx") + result = idx.astype(object) + assert isinstance(result, Index) + assert result.dtype == object + tm.assert_index_equal(result, expected) + assert result.name == expected.name + assert idx.tolist() == expected_list + + idx = PeriodIndex( + ["2013-01-01", "2013-01-02", "NaT", "2013-01-04"], freq="D", name="idx" + ) + expected_list = [ + Period("2013-01-01", freq="D"), + Period("2013-01-02", freq="D"), + Period("NaT", freq="D"), + Period("2013-01-04", freq="D"), + ] + expected = Index(expected_list, dtype=object, name="idx") + result = idx.astype(object) + assert isinstance(result, Index) + assert result.dtype == object + tm.assert_index_equal(result, expected) + for i in [0, 1, 3]: + assert result[i] == expected[i] + assert result[2] is NaT + assert result.name == expected.name + + result_list = idx.tolist() + for i in [0, 1, 3]: + assert result_list[i] == expected_list[i] + assert result_list[2] is NaT + + def test_astype_category(self): + obj = period_range("2000", periods=2, name="idx") + result = obj.astype("category") + expected = CategoricalIndex( + [Period("2000-01-01", freq="D"), Period("2000-01-02", freq="D")], name="idx" + ) + tm.assert_index_equal(result, expected) + + result = obj._data.astype("category") + expected = expected.values + tm.assert_categorical_equal(result, expected) + + def test_astype_array_fallback(self): + obj = period_range("2000", periods=2, name="idx") + result = obj.astype(bool) + expected = Index(np.array([True, True]), name="idx") + tm.assert_index_equal(result, expected) + + result = obj._data.astype(bool) + expected = np.array([True, True]) + tm.assert_numpy_array_equal(result, expected) + + def test_period_astype_to_timestamp(self, unit): + # GH#55958 + pi = PeriodIndex(["2011-01", "2011-02", "2011-03"], freq="M") + + exp = DatetimeIndex( + ["2011-01-01", "2011-02-01", "2011-03-01"], tz="US/Eastern" + ).as_unit(unit) + res = pi.astype(f"datetime64[{unit}, US/Eastern]") + tm.assert_index_equal(res, exp) + assert res.freq == exp.freq diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/test_factorize.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/test_factorize.py new file mode 100644 index 0000000000000000000000000000000000000000..1239eae6091b81dfcc1ac049996296f6af565df8 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/test_factorize.py @@ -0,0 +1,41 @@ +import numpy as np + +from pandas import PeriodIndex +import pandas._testing as tm + + +class TestFactorize: + def test_factorize_period(self): + idx1 = PeriodIndex( + ["2014-01", "2014-01", "2014-02", "2014-02", "2014-03", "2014-03"], + freq="M", + ) + + exp_arr = np.array([0, 0, 1, 1, 2, 2], dtype=np.intp) + exp_idx = PeriodIndex(["2014-01", "2014-02", "2014-03"], freq="M") + + arr, idx = idx1.factorize() + tm.assert_numpy_array_equal(arr, exp_arr) + tm.assert_index_equal(idx, exp_idx) + + arr, idx = idx1.factorize(sort=True) + tm.assert_numpy_array_equal(arr, exp_arr) + tm.assert_index_equal(idx, exp_idx) + + def test_factorize_period_nonmonotonic(self): + idx2 = PeriodIndex( + ["2014-03", "2014-03", "2014-02", "2014-01", "2014-03", "2014-01"], + freq="M", + ) + exp_idx = PeriodIndex(["2014-01", "2014-02", "2014-03"], freq="M") + + exp_arr = np.array([2, 2, 1, 0, 2, 0], dtype=np.intp) + arr, idx = idx2.factorize(sort=True) + tm.assert_numpy_array_equal(arr, exp_arr) + tm.assert_index_equal(idx, exp_idx) + + exp_arr = np.array([0, 0, 1, 2, 0, 2], dtype=np.intp) + exp_idx = PeriodIndex(["2014-03", "2014-02", "2014-01"], freq="M") + arr, idx = idx2.factorize() + tm.assert_numpy_array_equal(arr, exp_arr) + tm.assert_index_equal(idx, exp_idx) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/test_fillna.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/test_fillna.py new file mode 100644 index 0000000000000000000000000000000000000000..ed6b4686a06defdc3eac4e1f6427fb0569c2d48d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/test_fillna.py @@ -0,0 +1,41 @@ +from pandas import ( + Index, + NaT, + Period, + PeriodIndex, +) +import pandas._testing as tm + + +class TestFillNA: + def test_fillna_period(self): + # GH#11343 + idx = PeriodIndex(["2011-01-01 09:00", NaT, "2011-01-01 11:00"], freq="h") + + exp = PeriodIndex( + ["2011-01-01 09:00", "2011-01-01 10:00", "2011-01-01 11:00"], freq="h" + ) + result = idx.fillna(Period("2011-01-01 10:00", freq="h")) + tm.assert_index_equal(result, exp) + + exp = Index( + [ + Period("2011-01-01 09:00", freq="h"), + "x", + Period("2011-01-01 11:00", freq="h"), + ], + dtype=object, + ) + result = idx.fillna("x") + tm.assert_index_equal(result, exp) + + exp = Index( + [ + Period("2011-01-01 09:00", freq="h"), + Period("2011-01-01", freq="D"), + Period("2011-01-01 11:00", freq="h"), + ], + dtype=object, + ) + result = idx.fillna(Period("2011-01-01", freq="D")) + tm.assert_index_equal(result, exp) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/test_insert.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/test_insert.py new file mode 100644 index 0000000000000000000000000000000000000000..32bbe09d925679579c1ec015b435870d1282e6b3 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/test_insert.py @@ -0,0 +1,18 @@ +import numpy as np +import pytest + +from pandas import ( + NaT, + PeriodIndex, + period_range, +) +import pandas._testing as tm + + +class TestInsert: + @pytest.mark.parametrize("na", [np.nan, NaT, None]) + def test_insert(self, na): + # GH#18295 (test missing) + expected = PeriodIndex(["2017Q1", NaT, "2017Q2", "2017Q3", "2017Q4"], freq="Q") + result = period_range("2017Q1", periods=4, freq="Q").insert(1, na) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/test_is_full.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/test_is_full.py new file mode 100644 index 0000000000000000000000000000000000000000..b4105bedbe21d6dc85379f1a6eefb298db954056 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/test_is_full.py @@ -0,0 +1,23 @@ +import pytest + +from pandas import PeriodIndex + + +def test_is_full(): + index = PeriodIndex([2005, 2007, 2009], freq="Y") + assert not index.is_full + + index = PeriodIndex([2005, 2006, 2007], freq="Y") + assert index.is_full + + index = PeriodIndex([2005, 2005, 2007], freq="Y") + assert not index.is_full + + index = PeriodIndex([2005, 2005, 2006], freq="Y") + assert index.is_full + + index = PeriodIndex([2006, 2005, 2005], freq="Y") + with pytest.raises(ValueError, match="Index is not monotonic"): + index.is_full + + assert index[:0].is_full diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/test_repeat.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/test_repeat.py new file mode 100644 index 0000000000000000000000000000000000000000..fc344b06420d16a436c84a70f45a292cf6045856 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/test_repeat.py @@ -0,0 +1,26 @@ +import numpy as np +import pytest + +from pandas import ( + PeriodIndex, + period_range, +) +import pandas._testing as tm + + +class TestRepeat: + @pytest.mark.parametrize("use_numpy", [True, False]) + @pytest.mark.parametrize( + "index", + [ + period_range("2000-01-01", periods=3, freq="D"), + period_range("2001-01-01", periods=3, freq="2D"), + PeriodIndex(["2001-01", "NaT", "2003-01"], freq="M"), + ], + ) + def test_repeat_freqstr(self, index, use_numpy): + # GH#10183 + expected = PeriodIndex([per for per in index for _ in range(3)]) + result = np.repeat(index, 3) if use_numpy else index.repeat(3) + tm.assert_index_equal(result, expected) + assert result.freqstr == index.freqstr diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/test_shift.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/test_shift.py new file mode 100644 index 0000000000000000000000000000000000000000..fca3e3a559e1fe2e53571f5af919e9a0c49c4e68 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/test_shift.py @@ -0,0 +1,122 @@ +import numpy as np +import pytest + +from pandas import ( + PeriodIndex, + period_range, +) +import pandas._testing as tm + + +class TestPeriodIndexShift: + # --------------------------------------------------------------- + # PeriodIndex.shift is used by __add__ and __sub__ + + def test_pi_shift_ndarray(self): + idx = PeriodIndex( + ["2011-01", "2011-02", "NaT", "2011-04"], freq="M", name="idx" + ) + result = idx.shift(np.array([1, 2, 3, 4])) + expected = PeriodIndex( + ["2011-02", "2011-04", "NaT", "2011-08"], freq="M", name="idx" + ) + tm.assert_index_equal(result, expected) + + result = idx.shift(np.array([1, -2, 3, -4])) + expected = PeriodIndex( + ["2011-02", "2010-12", "NaT", "2010-12"], freq="M", name="idx" + ) + tm.assert_index_equal(result, expected) + + def test_shift(self): + pi1 = period_range(freq="Y", start="1/1/2001", end="12/1/2009") + pi2 = period_range(freq="Y", start="1/1/2002", end="12/1/2010") + + tm.assert_index_equal(pi1.shift(0), pi1) + + assert len(pi1) == len(pi2) + tm.assert_index_equal(pi1.shift(1), pi2) + + pi1 = period_range(freq="Y", start="1/1/2001", end="12/1/2009") + pi2 = period_range(freq="Y", start="1/1/2000", end="12/1/2008") + assert len(pi1) == len(pi2) + tm.assert_index_equal(pi1.shift(-1), pi2) + + pi1 = period_range(freq="M", start="1/1/2001", end="12/1/2009") + pi2 = period_range(freq="M", start="2/1/2001", end="1/1/2010") + assert len(pi1) == len(pi2) + tm.assert_index_equal(pi1.shift(1), pi2) + + pi1 = period_range(freq="M", start="1/1/2001", end="12/1/2009") + pi2 = period_range(freq="M", start="12/1/2000", end="11/1/2009") + assert len(pi1) == len(pi2) + tm.assert_index_equal(pi1.shift(-1), pi2) + + pi1 = period_range(freq="D", start="1/1/2001", end="12/1/2009") + pi2 = period_range(freq="D", start="1/2/2001", end="12/2/2009") + assert len(pi1) == len(pi2) + tm.assert_index_equal(pi1.shift(1), pi2) + + pi1 = period_range(freq="D", start="1/1/2001", end="12/1/2009") + pi2 = period_range(freq="D", start="12/31/2000", end="11/30/2009") + assert len(pi1) == len(pi2) + tm.assert_index_equal(pi1.shift(-1), pi2) + + def test_shift_corner_cases(self): + # GH#9903 + idx = PeriodIndex([], name="xxx", freq="h") + + msg = "`freq` argument is not supported for PeriodIndex.shift" + with pytest.raises(TypeError, match=msg): + # period shift doesn't accept freq + idx.shift(1, freq="h") + + tm.assert_index_equal(idx.shift(0), idx) + tm.assert_index_equal(idx.shift(3), idx) + + idx = PeriodIndex( + ["2011-01-01 10:00", "2011-01-01 11:00", "2011-01-01 12:00"], + name="xxx", + freq="h", + ) + tm.assert_index_equal(idx.shift(0), idx) + exp = PeriodIndex( + ["2011-01-01 13:00", "2011-01-01 14:00", "2011-01-01 15:00"], + name="xxx", + freq="h", + ) + tm.assert_index_equal(idx.shift(3), exp) + exp = PeriodIndex( + ["2011-01-01 07:00", "2011-01-01 08:00", "2011-01-01 09:00"], + name="xxx", + freq="h", + ) + tm.assert_index_equal(idx.shift(-3), exp) + + def test_shift_nat(self): + idx = PeriodIndex( + ["2011-01", "2011-02", "NaT", "2011-04"], freq="M", name="idx" + ) + result = idx.shift(1) + expected = PeriodIndex( + ["2011-02", "2011-03", "NaT", "2011-05"], freq="M", name="idx" + ) + tm.assert_index_equal(result, expected) + assert result.name == expected.name + + def test_shift_gh8083(self): + # test shift for PeriodIndex + # GH#8083 + drange = period_range("20130101", periods=5, freq="D") + result = drange.shift(1) + expected = PeriodIndex( + ["2013-01-02", "2013-01-03", "2013-01-04", "2013-01-05", "2013-01-06"], + freq="D", + ) + tm.assert_index_equal(result, expected) + + def test_shift_periods(self): + # GH #22458 : argument 'n' was deprecated in favor of 'periods' + idx = period_range(freq="Y", start="1/1/2001", end="12/1/2009") + tm.assert_index_equal(idx.shift(periods=0), idx) + tm.assert_index_equal(idx.shift(0), idx) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/test_to_timestamp.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/test_to_timestamp.py new file mode 100644 index 0000000000000000000000000000000000000000..3867f9e3245dc10a90ab4fcb1458b861ee7e2f86 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/methods/test_to_timestamp.py @@ -0,0 +1,142 @@ +from datetime import datetime + +import numpy as np +import pytest + +from pandas import ( + DatetimeIndex, + NaT, + PeriodIndex, + Timedelta, + Timestamp, + date_range, + period_range, +) +import pandas._testing as tm + + +class TestToTimestamp: + def test_to_timestamp_non_contiguous(self): + # GH#44100 + dti = date_range("2021-10-18", periods=9, freq="D") + pi = dti.to_period() + + result = pi[::2].to_timestamp() + expected = dti[::2] + tm.assert_index_equal(result, expected) + + result = pi._data[::2].to_timestamp() + expected = dti._data[::2] + # TODO: can we get the freq to round-trip? + tm.assert_datetime_array_equal(result, expected, check_freq=False) + + result = pi[::-1].to_timestamp() + expected = dti[::-1] + tm.assert_index_equal(result, expected) + + result = pi._data[::-1].to_timestamp() + expected = dti._data[::-1] + tm.assert_datetime_array_equal(result, expected, check_freq=False) + + result = pi[::2][::-1].to_timestamp() + expected = dti[::2][::-1] + tm.assert_index_equal(result, expected) + + result = pi._data[::2][::-1].to_timestamp() + expected = dti._data[::2][::-1] + tm.assert_datetime_array_equal(result, expected, check_freq=False) + + def test_to_timestamp_freq(self): + idx = period_range("2017", periods=12, freq="Y-DEC") + result = idx.to_timestamp() + expected = date_range("2017", periods=12, freq="YS-JAN") + tm.assert_index_equal(result, expected) + + def test_to_timestamp_pi_nat(self): + # GH#7228 + index = PeriodIndex(["NaT", "2011-01", "2011-02"], freq="M", name="idx") + + result = index.to_timestamp("D") + expected = DatetimeIndex( + [NaT, datetime(2011, 1, 1), datetime(2011, 2, 1)], + dtype="M8[ns]", + name="idx", + ) + tm.assert_index_equal(result, expected) + assert result.name == "idx" + + result2 = result.to_period(freq="M") + tm.assert_index_equal(result2, index) + assert result2.name == "idx" + + result3 = result.to_period(freq="3M") + exp = PeriodIndex(["NaT", "2011-01", "2011-02"], freq="3M", name="idx") + tm.assert_index_equal(result3, exp) + assert result3.freqstr == "3M" + + msg = "Frequency must be positive, because it represents span: -2Y" + with pytest.raises(ValueError, match=msg): + result.to_period(freq="-2Y") + + def test_to_timestamp_preserve_name(self): + index = period_range(freq="Y", start="1/1/2001", end="12/1/2009", name="foo") + assert index.name == "foo" + + conv = index.to_timestamp("D") + assert conv.name == "foo" + + def test_to_timestamp_quarterly_bug(self): + years = np.arange(1960, 2000).repeat(4) + quarters = np.tile(list(range(1, 5)), 40) + + pindex = PeriodIndex.from_fields(year=years, quarter=quarters) + + stamps = pindex.to_timestamp("D", "end") + expected = DatetimeIndex([x.to_timestamp("D", "end") for x in pindex]) + tm.assert_index_equal(stamps, expected) + assert stamps.freq == expected.freq + + def test_to_timestamp_pi_mult(self): + idx = PeriodIndex(["2011-01", "NaT", "2011-02"], freq="2M", name="idx") + + result = idx.to_timestamp() + expected = DatetimeIndex( + ["2011-01-01", "NaT", "2011-02-01"], dtype="M8[ns]", name="idx" + ) + tm.assert_index_equal(result, expected) + + result = idx.to_timestamp(how="E") + expected = DatetimeIndex( + ["2011-02-28", "NaT", "2011-03-31"], dtype="M8[ns]", name="idx" + ) + expected = expected + Timedelta(1, "D") - Timedelta(1, "ns") + tm.assert_index_equal(result, expected) + + def test_to_timestamp_pi_combined(self): + idx = period_range(start="2011", periods=2, freq="1D1h", name="idx") + + result = idx.to_timestamp() + expected = DatetimeIndex( + ["2011-01-01 00:00", "2011-01-02 01:00"], dtype="M8[ns]", name="idx" + ) + tm.assert_index_equal(result, expected) + + result = idx.to_timestamp(how="E") + expected = DatetimeIndex( + ["2011-01-02 00:59:59", "2011-01-03 01:59:59"], name="idx", dtype="M8[ns]" + ) + expected = expected + Timedelta(1, "s") - Timedelta(1, "ns") + tm.assert_index_equal(result, expected) + + result = idx.to_timestamp(how="E", freq="h") + expected = DatetimeIndex( + ["2011-01-02 00:00", "2011-01-03 01:00"], dtype="M8[ns]", name="idx" + ) + expected = expected + Timedelta(1, "h") - Timedelta(1, "ns") + tm.assert_index_equal(result, expected) + + def test_to_timestamp_1703(self): + index = period_range("1/1/2012", periods=4, freq="D") + + result = index.to_timestamp() + assert result[0] == Timestamp("1/1/2012") diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_constructors.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_constructors.py new file mode 100644 index 0000000000000000000000000000000000000000..892eb7b4a00d1ffbd9477194466bf9f2a2c522ff --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_constructors.py @@ -0,0 +1,691 @@ +import numpy as np +import pytest + +from pandas._libs.tslibs.period import IncompatibleFrequency + +from pandas.core.dtypes.dtypes import PeriodDtype + +from pandas import ( + Index, + NaT, + Period, + PeriodIndex, + Series, + date_range, + offsets, + period_range, +) +import pandas._testing as tm +from pandas.core.arrays import PeriodArray + + +class TestPeriodIndexDisallowedFreqs: + @pytest.mark.parametrize( + "freq,freq_depr", + [ + ("2M", "2ME"), + ("2Q-MAR", "2QE-MAR"), + ("2Y-FEB", "2YE-FEB"), + ("2M", "2me"), + ("2Q-MAR", "2qe-MAR"), + ("2Y-FEB", "2yE-feb"), + ], + ) + def test_period_index_offsets_frequency_error_message(self, freq, freq_depr): + # GH#52064 + msg = f"for Period, please use '{freq[1:]}' instead of '{freq_depr[1:]}'" + + with pytest.raises(ValueError, match=msg): + PeriodIndex(["2020-01-01", "2020-01-02"], freq=freq_depr) + + with pytest.raises(ValueError, match=msg): + period_range(start="2020-01-01", end="2020-01-02", freq=freq_depr) + + @pytest.mark.parametrize("freq_depr", ["2SME", "2sme", "2CBME", "2BYE", "2Bye"]) + def test_period_index_frequency_invalid_freq(self, freq_depr): + # GH#9586 + msg = f"Invalid frequency: {freq_depr[1:]}" + + with pytest.raises(ValueError, match=msg): + period_range("2020-01", "2020-05", freq=freq_depr) + with pytest.raises(ValueError, match=msg): + PeriodIndex(["2020-01", "2020-05"], freq=freq_depr) + + @pytest.mark.parametrize("freq", ["2BQE-SEP", "2BYE-MAR", "2BME"]) + def test_period_index_from_datetime_index_invalid_freq(self, freq): + # GH#56899 + msg = f"Invalid frequency: {freq[1:]}" + + rng = date_range("01-Jan-2012", periods=8, freq=freq) + with pytest.raises(ValueError, match=msg): + rng.to_period() + + +class TestPeriodIndex: + def test_from_ordinals(self): + Period(ordinal=-1000, freq="Y") + Period(ordinal=0, freq="Y") + + msg = "The 'ordinal' keyword in PeriodIndex is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + idx1 = PeriodIndex(ordinal=[-1, 0, 1], freq="Y") + with tm.assert_produces_warning(FutureWarning, match=msg): + idx2 = PeriodIndex(ordinal=np.array([-1, 0, 1]), freq="Y") + tm.assert_index_equal(idx1, idx2) + + alt1 = PeriodIndex.from_ordinals([-1, 0, 1], freq="Y") + tm.assert_index_equal(alt1, idx1) + + alt2 = PeriodIndex.from_ordinals(np.array([-1, 0, 1]), freq="Y") + tm.assert_index_equal(alt2, idx2) + + def test_keyword_mismatch(self): + # GH#55961 we should get exactly one of data/ordinals/**fields + per = Period("2016-01-01", "D") + depr_msg1 = "The 'ordinal' keyword in PeriodIndex is deprecated" + depr_msg2 = "Constructing PeriodIndex from fields is deprecated" + + err_msg1 = "Cannot pass both data and ordinal" + with pytest.raises(ValueError, match=err_msg1): + with tm.assert_produces_warning(FutureWarning, match=depr_msg1): + PeriodIndex(data=[per], ordinal=[per.ordinal], freq=per.freq) + + err_msg2 = "Cannot pass both data and fields" + with pytest.raises(ValueError, match=err_msg2): + with tm.assert_produces_warning(FutureWarning, match=depr_msg2): + PeriodIndex(data=[per], year=[per.year], freq=per.freq) + + err_msg3 = "Cannot pass both ordinal and fields" + with pytest.raises(ValueError, match=err_msg3): + with tm.assert_produces_warning(FutureWarning, match=depr_msg2): + PeriodIndex(ordinal=[per.ordinal], year=[per.year], freq=per.freq) + + def test_construction_base_constructor(self): + # GH 13664 + arr = [Period("2011-01", freq="M"), NaT, Period("2011-03", freq="M")] + tm.assert_index_equal(Index(arr), PeriodIndex(arr)) + tm.assert_index_equal(Index(np.array(arr)), PeriodIndex(np.array(arr))) + + arr = [np.nan, NaT, Period("2011-03", freq="M")] + tm.assert_index_equal(Index(arr), PeriodIndex(arr)) + tm.assert_index_equal(Index(np.array(arr)), PeriodIndex(np.array(arr))) + + arr = [Period("2011-01", freq="M"), NaT, Period("2011-03", freq="D")] + tm.assert_index_equal(Index(arr), Index(arr, dtype=object)) + + tm.assert_index_equal(Index(np.array(arr)), Index(np.array(arr), dtype=object)) + + def test_base_constructor_with_period_dtype(self): + dtype = PeriodDtype("D") + values = ["2011-01-01", "2012-03-04", "2014-05-01"] + result = Index(values, dtype=dtype) + + expected = PeriodIndex(values, dtype=dtype) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "values_constructor", [list, np.array, PeriodIndex, PeriodArray._from_sequence] + ) + def test_index_object_dtype(self, values_constructor): + # Index(periods, dtype=object) is an Index (not an PeriodIndex) + periods = [ + Period("2011-01", freq="M"), + NaT, + Period("2011-03", freq="M"), + ] + values = values_constructor(periods) + result = Index(values, dtype=object) + + assert type(result) is Index + tm.assert_numpy_array_equal(result.values, np.array(values)) + + def test_constructor_use_start_freq(self): + # GH #1118 + msg1 = "Period with BDay freq is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg1): + p = Period("4/2/2012", freq="B") + msg2 = r"PeriodDtype\[B\] is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg2): + expected = period_range(start="4/2/2012", periods=10, freq="B") + + with tm.assert_produces_warning(FutureWarning, match=msg2): + index = period_range(start=p, periods=10) + tm.assert_index_equal(index, expected) + + def test_constructor_field_arrays(self): + # GH #1264 + + years = np.arange(1990, 2010).repeat(4)[2:-2] + quarters = np.tile(np.arange(1, 5), 20)[2:-2] + + depr_msg = "Constructing PeriodIndex from fields is deprecated" + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + index = PeriodIndex(year=years, quarter=quarters, freq="Q-DEC") + expected = period_range("1990Q3", "2009Q2", freq="Q-DEC") + tm.assert_index_equal(index, expected) + + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + index2 = PeriodIndex(year=years, quarter=quarters, freq="2Q-DEC") + tm.assert_numpy_array_equal(index.asi8, index2.asi8) + + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + index = PeriodIndex(year=years, quarter=quarters) + tm.assert_index_equal(index, expected) + + years = [2007, 2007, 2007] + months = [1, 2] + + msg = "Mismatched Period array lengths" + with pytest.raises(ValueError, match=msg): + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + PeriodIndex(year=years, month=months, freq="M") + with pytest.raises(ValueError, match=msg): + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + PeriodIndex(year=years, month=months, freq="2M") + + years = [2007, 2007, 2007] + months = [1, 2, 3] + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + idx = PeriodIndex(year=years, month=months, freq="M") + exp = period_range("2007-01", periods=3, freq="M") + tm.assert_index_equal(idx, exp) + + def test_constructor_nano(self): + idx = period_range( + start=Period(ordinal=1, freq="ns"), + end=Period(ordinal=4, freq="ns"), + freq="ns", + ) + exp = PeriodIndex( + [ + Period(ordinal=1, freq="ns"), + Period(ordinal=2, freq="ns"), + Period(ordinal=3, freq="ns"), + Period(ordinal=4, freq="ns"), + ], + freq="ns", + ) + tm.assert_index_equal(idx, exp) + + def test_constructor_arrays_negative_year(self): + years = np.arange(1960, 2000, dtype=np.int64).repeat(4) + quarters = np.tile(np.array([1, 2, 3, 4], dtype=np.int64), 40) + + msg = "Constructing PeriodIndex from fields is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + pindex = PeriodIndex(year=years, quarter=quarters) + + tm.assert_index_equal(pindex.year, Index(years)) + tm.assert_index_equal(pindex.quarter, Index(quarters)) + + alt = PeriodIndex.from_fields(year=years, quarter=quarters) + tm.assert_index_equal(alt, pindex) + + def test_constructor_invalid_quarters(self): + depr_msg = "Constructing PeriodIndex from fields is deprecated" + msg = "Quarter must be 1 <= q <= 4" + with pytest.raises(ValueError, match=msg): + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + PeriodIndex( + year=range(2000, 2004), quarter=list(range(4)), freq="Q-DEC" + ) + + def test_period_range_fractional_period(self): + msg = "Non-integer 'periods' in pd.date_range, pd.timedelta_range" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = period_range("2007-01", periods=10.5, freq="M") + exp = period_range("2007-01", periods=10, freq="M") + tm.assert_index_equal(result, exp) + + def test_constructor_with_without_freq(self): + # GH53687 + start = Period("2002-01-01 00:00", freq="30min") + exp = period_range(start=start, periods=5, freq=start.freq) + result = period_range(start=start, periods=5) + tm.assert_index_equal(exp, result) + + def test_constructor_fromarraylike(self): + idx = period_range("2007-01", periods=20, freq="M") + + # values is an array of Period, thus can retrieve freq + tm.assert_index_equal(PeriodIndex(idx.values), idx) + tm.assert_index_equal(PeriodIndex(list(idx.values)), idx) + + msg = "freq not specified and cannot be inferred" + with pytest.raises(ValueError, match=msg): + PeriodIndex(idx.asi8) + with pytest.raises(ValueError, match=msg): + PeriodIndex(list(idx.asi8)) + + msg = "'Period' object is not iterable" + with pytest.raises(TypeError, match=msg): + PeriodIndex(data=Period("2007", freq="Y")) + + result = PeriodIndex(iter(idx)) + tm.assert_index_equal(result, idx) + + result = PeriodIndex(idx) + tm.assert_index_equal(result, idx) + + result = PeriodIndex(idx, freq="M") + tm.assert_index_equal(result, idx) + + result = PeriodIndex(idx, freq=offsets.MonthEnd()) + tm.assert_index_equal(result, idx) + assert result.freq == "ME" + + result = PeriodIndex(idx, freq="2M") + tm.assert_index_equal(result, idx.asfreq("2M")) + assert result.freq == "2ME" + + result = PeriodIndex(idx, freq=offsets.MonthEnd(2)) + tm.assert_index_equal(result, idx.asfreq("2M")) + assert result.freq == "2ME" + + result = PeriodIndex(idx, freq="D") + exp = idx.asfreq("D", "e") + tm.assert_index_equal(result, exp) + + def test_constructor_datetime64arr(self): + vals = np.arange(100000, 100000 + 10000, 100, dtype=np.int64) + vals = vals.view(np.dtype("M8[us]")) + + pi = PeriodIndex(vals, freq="D") + + expected = PeriodIndex(vals.astype("M8[ns]"), freq="D") + tm.assert_index_equal(pi, expected) + + @pytest.mark.parametrize("box", [None, "series", "index"]) + def test_constructor_datetime64arr_ok(self, box): + # https://github.com/pandas-dev/pandas/issues/23438 + data = date_range("2017", periods=4, freq="ME") + if box is None: + data = data._values + elif box == "series": + data = Series(data) + + result = PeriodIndex(data, freq="D") + expected = PeriodIndex( + ["2017-01-31", "2017-02-28", "2017-03-31", "2017-04-30"], freq="D" + ) + tm.assert_index_equal(result, expected) + + def test_constructor_dtype(self): + # passing a dtype with a tz should localize + idx = PeriodIndex(["2013-01", "2013-03"], dtype="period[M]") + exp = PeriodIndex(["2013-01", "2013-03"], freq="M") + tm.assert_index_equal(idx, exp) + assert idx.dtype == "period[M]" + + idx = PeriodIndex(["2013-01-05", "2013-03-05"], dtype="period[3D]") + exp = PeriodIndex(["2013-01-05", "2013-03-05"], freq="3D") + tm.assert_index_equal(idx, exp) + assert idx.dtype == "period[3D]" + + # if we already have a freq and its not the same, then asfreq + # (not changed) + idx = PeriodIndex(["2013-01-01", "2013-01-02"], freq="D") + + res = PeriodIndex(idx, dtype="period[M]") + exp = PeriodIndex(["2013-01", "2013-01"], freq="M") + tm.assert_index_equal(res, exp) + assert res.dtype == "period[M]" + + res = PeriodIndex(idx, freq="M") + tm.assert_index_equal(res, exp) + assert res.dtype == "period[M]" + + msg = "specified freq and dtype are different" + with pytest.raises(IncompatibleFrequency, match=msg): + PeriodIndex(["2011-01"], freq="M", dtype="period[D]") + + def test_constructor_empty(self): + idx = PeriodIndex([], freq="M") + assert isinstance(idx, PeriodIndex) + assert len(idx) == 0 + assert idx.freq == "ME" + + with pytest.raises(ValueError, match="freq not specified"): + PeriodIndex([]) + + def test_constructor_pi_nat(self): + idx = PeriodIndex( + [Period("2011-01", freq="M"), NaT, Period("2011-01", freq="M")] + ) + exp = PeriodIndex(["2011-01", "NaT", "2011-01"], freq="M") + tm.assert_index_equal(idx, exp) + + idx = PeriodIndex( + np.array([Period("2011-01", freq="M"), NaT, Period("2011-01", freq="M")]) + ) + tm.assert_index_equal(idx, exp) + + idx = PeriodIndex( + [NaT, NaT, Period("2011-01", freq="M"), Period("2011-01", freq="M")] + ) + exp = PeriodIndex(["NaT", "NaT", "2011-01", "2011-01"], freq="M") + tm.assert_index_equal(idx, exp) + + idx = PeriodIndex( + np.array( + [NaT, NaT, Period("2011-01", freq="M"), Period("2011-01", freq="M")] + ) + ) + tm.assert_index_equal(idx, exp) + + idx = PeriodIndex([NaT, NaT, "2011-01", "2011-01"], freq="M") + tm.assert_index_equal(idx, exp) + + with pytest.raises(ValueError, match="freq not specified"): + PeriodIndex([NaT, NaT]) + + with pytest.raises(ValueError, match="freq not specified"): + PeriodIndex(np.array([NaT, NaT])) + + with pytest.raises(ValueError, match="freq not specified"): + PeriodIndex(["NaT", "NaT"]) + + with pytest.raises(ValueError, match="freq not specified"): + PeriodIndex(np.array(["NaT", "NaT"])) + + def test_constructor_incompat_freq(self): + msg = "Input has different freq=D from PeriodIndex\\(freq=M\\)" + + with pytest.raises(IncompatibleFrequency, match=msg): + PeriodIndex([Period("2011-01", freq="M"), NaT, Period("2011-01", freq="D")]) + + with pytest.raises(IncompatibleFrequency, match=msg): + PeriodIndex( + np.array( + [Period("2011-01", freq="M"), NaT, Period("2011-01", freq="D")] + ) + ) + + # first element is NaT + with pytest.raises(IncompatibleFrequency, match=msg): + PeriodIndex([NaT, Period("2011-01", freq="M"), Period("2011-01", freq="D")]) + + with pytest.raises(IncompatibleFrequency, match=msg): + PeriodIndex( + np.array( + [NaT, Period("2011-01", freq="M"), Period("2011-01", freq="D")] + ) + ) + + def test_constructor_mixed(self): + idx = PeriodIndex(["2011-01", NaT, Period("2011-01", freq="M")]) + exp = PeriodIndex(["2011-01", "NaT", "2011-01"], freq="M") + tm.assert_index_equal(idx, exp) + + idx = PeriodIndex(["NaT", NaT, Period("2011-01", freq="M")]) + exp = PeriodIndex(["NaT", "NaT", "2011-01"], freq="M") + tm.assert_index_equal(idx, exp) + + idx = PeriodIndex([Period("2011-01-01", freq="D"), NaT, "2012-01-01"]) + exp = PeriodIndex(["2011-01-01", "NaT", "2012-01-01"], freq="D") + tm.assert_index_equal(idx, exp) + + @pytest.mark.parametrize("floats", [[1.1, 2.1], np.array([1.1, 2.1])]) + def test_constructor_floats(self, floats): + msg = "PeriodIndex does not allow floating point in construction" + with pytest.raises(TypeError, match=msg): + PeriodIndex(floats) + + def test_constructor_year_and_quarter(self): + year = Series([2001, 2002, 2003]) + quarter = year - 2000 + msg = "Constructing PeriodIndex from fields is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + idx = PeriodIndex(year=year, quarter=quarter) + strs = [f"{t[0]:d}Q{t[1]:d}" for t in zip(quarter, year)] + lops = list(map(Period, strs)) + p = PeriodIndex(lops) + tm.assert_index_equal(p, idx) + + def test_constructor_freq_mult(self): + # GH #7811 + pidx = period_range(start="2014-01", freq="2M", periods=4) + expected = PeriodIndex(["2014-01", "2014-03", "2014-05", "2014-07"], freq="2M") + tm.assert_index_equal(pidx, expected) + + pidx = period_range(start="2014-01-02", end="2014-01-15", freq="3D") + expected = PeriodIndex( + ["2014-01-02", "2014-01-05", "2014-01-08", "2014-01-11", "2014-01-14"], + freq="3D", + ) + tm.assert_index_equal(pidx, expected) + + pidx = period_range(end="2014-01-01 17:00", freq="4h", periods=3) + expected = PeriodIndex( + ["2014-01-01 09:00", "2014-01-01 13:00", "2014-01-01 17:00"], freq="4h" + ) + tm.assert_index_equal(pidx, expected) + + msg = "Frequency must be positive, because it represents span: -1M" + with pytest.raises(ValueError, match=msg): + PeriodIndex(["2011-01"], freq="-1M") + + msg = "Frequency must be positive, because it represents span: 0M" + with pytest.raises(ValueError, match=msg): + PeriodIndex(["2011-01"], freq="0M") + + msg = "Frequency must be positive, because it represents span: 0M" + with pytest.raises(ValueError, match=msg): + period_range("2011-01", periods=3, freq="0M") + + @pytest.mark.parametrize( + "freq_offset, freq_period", + [ + ("YE", "Y"), + ("ME", "M"), + ("D", "D"), + ("min", "min"), + ("s", "s"), + ], + ) + @pytest.mark.parametrize("mult", [1, 2, 3, 4, 5]) + def test_constructor_freq_mult_dti_compat(self, mult, freq_offset, freq_period): + freqstr_offset = str(mult) + freq_offset + freqstr_period = str(mult) + freq_period + pidx = period_range(start="2014-04-01", freq=freqstr_period, periods=10) + expected = date_range( + start="2014-04-01", freq=freqstr_offset, periods=10 + ).to_period(freqstr_period) + tm.assert_index_equal(pidx, expected) + + @pytest.mark.parametrize("mult", [1, 2, 3, 4, 5]) + def test_constructor_freq_mult_dti_compat_month(self, mult): + pidx = period_range(start="2014-04-01", freq=f"{mult}M", periods=10) + expected = date_range( + start="2014-04-01", freq=f"{mult}ME", periods=10 + ).to_period(f"{mult}M") + tm.assert_index_equal(pidx, expected) + + def test_constructor_freq_combined(self): + for freq in ["1D1h", "1h1D"]: + pidx = PeriodIndex(["2016-01-01", "2016-01-02"], freq=freq) + expected = PeriodIndex(["2016-01-01 00:00", "2016-01-02 00:00"], freq="25h") + for freq in ["1D1h", "1h1D"]: + pidx = period_range(start="2016-01-01", periods=2, freq=freq) + expected = PeriodIndex(["2016-01-01 00:00", "2016-01-02 01:00"], freq="25h") + tm.assert_index_equal(pidx, expected) + + def test_period_range_length(self): + pi = period_range(freq="Y", start="1/1/2001", end="12/1/2009") + assert len(pi) == 9 + + pi = period_range(freq="Q", start="1/1/2001", end="12/1/2009") + assert len(pi) == 4 * 9 + + pi = period_range(freq="M", start="1/1/2001", end="12/1/2009") + assert len(pi) == 12 * 9 + + pi = period_range(freq="D", start="1/1/2001", end="12/31/2009") + assert len(pi) == 365 * 9 + 2 + + msg = "Period with BDay freq is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + pi = period_range(freq="B", start="1/1/2001", end="12/31/2009") + assert len(pi) == 261 * 9 + + pi = period_range(freq="h", start="1/1/2001", end="12/31/2001 23:00") + assert len(pi) == 365 * 24 + + pi = period_range(freq="Min", start="1/1/2001", end="1/1/2001 23:59") + assert len(pi) == 24 * 60 + + pi = period_range(freq="s", start="1/1/2001", end="1/1/2001 23:59:59") + assert len(pi) == 24 * 60 * 60 + + with tm.assert_produces_warning(FutureWarning, match=msg): + start = Period("02-Apr-2005", "B") + i1 = period_range(start=start, periods=20) + assert len(i1) == 20 + assert i1.freq == start.freq + assert i1[0] == start + + end_intv = Period("2006-12-31", "W") + i1 = period_range(end=end_intv, periods=10) + assert len(i1) == 10 + assert i1.freq == end_intv.freq + assert i1[-1] == end_intv + + msg = "'w' is deprecated and will be removed in a future version." + with tm.assert_produces_warning(FutureWarning, match=msg): + end_intv = Period("2006-12-31", "1w") + i2 = period_range(end=end_intv, periods=10) + assert len(i1) == len(i2) + assert (i1 == i2).all() + assert i1.freq == i2.freq + + def test_infer_freq_from_first_element(self): + msg = "Period with BDay freq is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + start = Period("02-Apr-2005", "B") + end_intv = Period("2005-05-01", "B") + period_range(start=start, end=end_intv) + + # infer freq from first element + i2 = PeriodIndex([end_intv, Period("2005-05-05", "B")]) + assert len(i2) == 2 + assert i2[0] == end_intv + + with tm.assert_produces_warning(FutureWarning, match=msg): + i2 = PeriodIndex(np.array([end_intv, Period("2005-05-05", "B")])) + assert len(i2) == 2 + assert i2[0] == end_intv + + def test_mixed_freq_raises(self): + # Mixed freq should fail + msg = "Period with BDay freq is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + end_intv = Period("2005-05-01", "B") + + msg = "'w' is deprecated and will be removed in a future version." + with tm.assert_produces_warning(FutureWarning, match=msg): + vals = [end_intv, Period("2006-12-31", "w")] + msg = r"Input has different freq=W-SUN from PeriodIndex\(freq=B\)" + depr_msg = r"PeriodDtype\[B\] is deprecated" + with pytest.raises(IncompatibleFrequency, match=msg): + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + PeriodIndex(vals) + vals = np.array(vals) + with pytest.raises(IncompatibleFrequency, match=msg): + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + PeriodIndex(vals) + + @pytest.mark.parametrize( + "freq", ["M", "Q", "Y", "D", "B", "min", "s", "ms", "us", "ns", "h"] + ) + @pytest.mark.filterwarnings( + r"ignore:Period with BDay freq is deprecated:FutureWarning" + ) + @pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") + def test_recreate_from_data(self, freq): + org = period_range(start="2001/04/01", freq=freq, periods=1) + idx = PeriodIndex(org.values, freq=freq) + tm.assert_index_equal(idx, org) + + def test_map_with_string_constructor(self): + raw = [2005, 2007, 2009] + index = PeriodIndex(raw, freq="Y") + + expected = Index([str(num) for num in raw]) + res = index.map(str) + + # should return an Index + assert isinstance(res, Index) + + # preserve element types + assert all(isinstance(resi, str) for resi in res) + + # lastly, values should compare equal + tm.assert_index_equal(res, expected) + + +class TestSimpleNew: + def test_constructor_simple_new(self): + idx = period_range("2007-01", name="p", periods=2, freq="M") + + with pytest.raises(AssertionError, match=""): + idx._simple_new(idx, name="p") + + result = idx._simple_new(idx._data, name="p") + tm.assert_index_equal(result, idx) + + msg = "Should be numpy array of type i8" + with pytest.raises(AssertionError, match=msg): + # Need ndarray, not int64 Index + type(idx._data)._simple_new(Index(idx.asi8), dtype=idx.dtype) + + arr = type(idx._data)._simple_new(idx.asi8, dtype=idx.dtype) + result = idx._simple_new(arr, name="p") + tm.assert_index_equal(result, idx) + + def test_constructor_simple_new_empty(self): + # GH13079 + idx = PeriodIndex([], freq="M", name="p") + with pytest.raises(AssertionError, match=""): + idx._simple_new(idx, name="p") + + result = idx._simple_new(idx._data, name="p") + tm.assert_index_equal(result, idx) + + @pytest.mark.parametrize("floats", [[1.1, 2.1], np.array([1.1, 2.1])]) + def test_period_index_simple_new_disallows_floats(self, floats): + with pytest.raises(AssertionError, match="= -1" + ) + with pytest.raises(ValueError, match=msg): + idx.take(np.array([1, 0, -2]), fill_value=True) + with pytest.raises(ValueError, match=msg): + idx.take(np.array([1, 0, -5]), fill_value=True) + + msg = "index -5 is out of bounds for( axis 0 with)? size 3" + with pytest.raises(IndexError, match=msg): + idx.take(np.array([1, -5])) + + +class TestGetValue: + @pytest.mark.parametrize("freq", ["h", "D"]) + def test_get_value_datetime_hourly(self, freq): + # get_loc and get_value should treat datetime objects symmetrically + # TODO: this test used to test get_value, which is removed in 2.0. + # should this test be moved somewhere, or is what's left redundant? + dti = date_range("2016-01-01", periods=3, freq="MS") + pi = dti.to_period(freq) + ser = Series(range(7, 10), index=pi) + + ts = dti[0] + + assert pi.get_loc(ts) == 0 + assert ser[ts] == 7 + assert ser.loc[ts] == 7 + + ts2 = ts + Timedelta(hours=3) + if freq == "h": + with pytest.raises(KeyError, match="2016-01-01 03:00"): + pi.get_loc(ts2) + with pytest.raises(KeyError, match="2016-01-01 03:00"): + ser[ts2] + with pytest.raises(KeyError, match="2016-01-01 03:00"): + ser.loc[ts2] + else: + assert pi.get_loc(ts2) == 0 + assert ser[ts2] == 7 + assert ser.loc[ts2] == 7 + + +class TestContains: + def test_contains(self): + # GH 17717 + p0 = Period("2017-09-01") + p1 = Period("2017-09-02") + p2 = Period("2017-09-03") + p3 = Period("2017-09-04") + + ps0 = [p0, p1, p2] + idx0 = PeriodIndex(ps0) + + for p in ps0: + assert p in idx0 + assert str(p) in idx0 + + # GH#31172 + # Higher-resolution period-like are _not_ considered as contained + key = "2017-09-01 00:00:01" + assert key not in idx0 + with pytest.raises(KeyError, match=key): + idx0.get_loc(key) + + assert "2017-09" in idx0 + + assert p3 not in idx0 + + def test_contains_freq_mismatch(self): + rng = period_range("2007-01", freq="M", periods=10) + + assert Period("2007-01", freq="M") in rng + assert Period("2007-01", freq="D") not in rng + assert Period("2007-01", freq="2M") not in rng + + def test_contains_nat(self): + # see gh-13582 + idx = period_range("2007-01", freq="M", periods=10) + assert NaT not in idx + assert None not in idx + assert float("nan") not in idx + assert np.nan not in idx + + idx = PeriodIndex(["2011-01", "NaT", "2011-02"], freq="M") + assert NaT in idx + assert None in idx + assert float("nan") in idx + assert np.nan in idx + + +class TestAsOfLocs: + def test_asof_locs_mismatched_type(self): + dti = date_range("2016-01-01", periods=3) + pi = dti.to_period("D") + pi2 = dti.to_period("h") + + mask = np.array([0, 1, 0], dtype=bool) + + msg = "must be DatetimeIndex or PeriodIndex" + with pytest.raises(TypeError, match=msg): + pi.asof_locs(pd.Index(pi.asi8, dtype=np.int64), mask) + + with pytest.raises(TypeError, match=msg): + pi.asof_locs(pd.Index(pi.asi8, dtype=np.float64), mask) + + with pytest.raises(TypeError, match=msg): + # TimedeltaIndex + pi.asof_locs(dti - dti, mask) + + msg = "Input has different freq=h" + with pytest.raises(libperiod.IncompatibleFrequency, match=msg): + pi.asof_locs(pi2, mask) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_join.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_join.py new file mode 100644 index 0000000000000000000000000000000000000000..3e659c1a632669c2b89d7ea0411de5c4c35108ad --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_join.py @@ -0,0 +1,58 @@ +import numpy as np +import pytest + +from pandas._libs.tslibs import IncompatibleFrequency + +from pandas import ( + DataFrame, + Index, + PeriodIndex, + date_range, + period_range, +) +import pandas._testing as tm + + +class TestJoin: + def test_join_outer_indexer(self): + pi = period_range("1/1/2000", "1/20/2000", freq="D") + + result = pi._outer_indexer(pi) + tm.assert_extension_array_equal(result[0], pi._values) + tm.assert_numpy_array_equal(result[1], np.arange(len(pi), dtype=np.intp)) + tm.assert_numpy_array_equal(result[2], np.arange(len(pi), dtype=np.intp)) + + def test_joins(self, join_type): + index = period_range("1/1/2000", "1/20/2000", freq="D") + + joined = index.join(index[:-5], how=join_type) + + assert isinstance(joined, PeriodIndex) + assert joined.freq == index.freq + + def test_join_self(self, join_type): + index = period_range("1/1/2000", "1/20/2000", freq="D") + + res = index.join(index, how=join_type) + assert index is res + + def test_join_does_not_recur(self): + df = DataFrame( + np.ones((3, 2)), + index=date_range("2020-01-01", periods=3), + columns=period_range("2020-01-01", periods=2), + ) + ser = df.iloc[:2, 0] + + res = ser.index.join(df.columns, how="outer") + expected = Index( + [ser.index[0], ser.index[1], df.columns[0], df.columns[1]], object + ) + tm.assert_index_equal(res, expected) + + def test_join_mismatched_freq_raises(self): + index = period_range("1/1/2000", "1/20/2000", freq="D") + index3 = period_range("1/1/2000", "1/20/2000", freq="2D") + msg = r".*Input has different freq=2D from Period\(freq=D\)" + with pytest.raises(IncompatibleFrequency, match=msg): + index.join(index3) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_monotonic.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_monotonic.py new file mode 100644 index 0000000000000000000000000000000000000000..15cb8f71cdcf3221800e6dca43390ae79114a9df --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_monotonic.py @@ -0,0 +1,42 @@ +from pandas import ( + Period, + PeriodIndex, +) + + +def test_is_monotonic_increasing(): + # GH#17717 + p0 = Period("2017-09-01") + p1 = Period("2017-09-02") + p2 = Period("2017-09-03") + + idx_inc0 = PeriodIndex([p0, p1, p2]) + idx_inc1 = PeriodIndex([p0, p1, p1]) + idx_dec0 = PeriodIndex([p2, p1, p0]) + idx_dec1 = PeriodIndex([p2, p1, p1]) + idx = PeriodIndex([p1, p2, p0]) + + assert idx_inc0.is_monotonic_increasing is True + assert idx_inc1.is_monotonic_increasing is True + assert idx_dec0.is_monotonic_increasing is False + assert idx_dec1.is_monotonic_increasing is False + assert idx.is_monotonic_increasing is False + + +def test_is_monotonic_decreasing(): + # GH#17717 + p0 = Period("2017-09-01") + p1 = Period("2017-09-02") + p2 = Period("2017-09-03") + + idx_inc0 = PeriodIndex([p0, p1, p2]) + idx_inc1 = PeriodIndex([p0, p1, p1]) + idx_dec0 = PeriodIndex([p2, p1, p0]) + idx_dec1 = PeriodIndex([p2, p1, p1]) + idx = PeriodIndex([p1, p2, p0]) + + assert idx_inc0.is_monotonic_decreasing is False + assert idx_inc1.is_monotonic_decreasing is False + assert idx_dec0.is_monotonic_decreasing is True + assert idx_dec1.is_monotonic_decreasing is True + assert idx.is_monotonic_decreasing is False diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_partial_slicing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_partial_slicing.py new file mode 100644 index 0000000000000000000000000000000000000000..4fab12f195dc03d43e952d5ee424955330933c0a --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_partial_slicing.py @@ -0,0 +1,198 @@ +import numpy as np +import pytest + +from pandas import ( + DataFrame, + PeriodIndex, + Series, + date_range, + period_range, +) +import pandas._testing as tm + + +class TestPeriodIndex: + def test_getitem_periodindex_duplicates_string_slice( + self, using_copy_on_write, warn_copy_on_write + ): + # monotonic + idx = PeriodIndex([2000, 2007, 2007, 2009, 2009], freq="Y-JUN") + ts = Series(np.random.default_rng(2).standard_normal(len(idx)), index=idx) + original = ts.copy() + + result = ts["2007"] + expected = ts[1:3] + tm.assert_series_equal(result, expected) + with tm.assert_cow_warning(warn_copy_on_write): + result[:] = 1 + if using_copy_on_write: + tm.assert_series_equal(ts, original) + else: + assert (ts[1:3] == 1).all() + + # not monotonic + idx = PeriodIndex([2000, 2007, 2007, 2009, 2007], freq="Y-JUN") + ts = Series(np.random.default_rng(2).standard_normal(len(idx)), index=idx) + + result = ts["2007"] + expected = ts[idx == "2007"] + tm.assert_series_equal(result, expected) + + def test_getitem_periodindex_quarter_string(self): + pi = PeriodIndex(["2Q05", "3Q05", "4Q05", "1Q06", "2Q06"], freq="Q") + ser = Series(np.random.default_rng(2).random(len(pi)), index=pi).cumsum() + # Todo: fix these accessors! + assert ser["05Q4"] == ser.iloc[2] + + def test_pindex_slice_index(self): + pi = period_range(start="1/1/10", end="12/31/12", freq="M") + s = Series(np.random.default_rng(2).random(len(pi)), index=pi) + res = s["2010"] + exp = s[0:12] + tm.assert_series_equal(res, exp) + res = s["2011"] + exp = s[12:24] + tm.assert_series_equal(res, exp) + + @pytest.mark.parametrize("make_range", [date_range, period_range]) + def test_range_slice_day(self, make_range): + # GH#6716 + idx = make_range(start="2013/01/01", freq="D", periods=400) + + msg = "slice indices must be integers or None or have an __index__ method" + # slices against index should raise IndexError + values = [ + "2014", + "2013/02", + "2013/01/02", + "2013/02/01 9H", + "2013/02/01 09:00", + ] + for v in values: + with pytest.raises(TypeError, match=msg): + idx[v:] + + s = Series(np.random.default_rng(2).random(len(idx)), index=idx) + + tm.assert_series_equal(s["2013/01/02":], s[1:]) + tm.assert_series_equal(s["2013/01/02":"2013/01/05"], s[1:5]) + tm.assert_series_equal(s["2013/02":], s[31:]) + tm.assert_series_equal(s["2014":], s[365:]) + + invalid = ["2013/02/01 9H", "2013/02/01 09:00"] + for v in invalid: + with pytest.raises(TypeError, match=msg): + idx[v:] + + @pytest.mark.parametrize("make_range", [date_range, period_range]) + def test_range_slice_seconds(self, make_range): + # GH#6716 + idx = make_range(start="2013/01/01 09:00:00", freq="s", periods=4000) + msg = "slice indices must be integers or None or have an __index__ method" + + # slices against index should raise IndexError + values = [ + "2014", + "2013/02", + "2013/01/02", + "2013/02/01 9H", + "2013/02/01 09:00", + ] + for v in values: + with pytest.raises(TypeError, match=msg): + idx[v:] + + s = Series(np.random.default_rng(2).random(len(idx)), index=idx) + + tm.assert_series_equal(s["2013/01/01 09:05":"2013/01/01 09:10"], s[300:660]) + tm.assert_series_equal(s["2013/01/01 10:00":"2013/01/01 10:05"], s[3600:3960]) + tm.assert_series_equal(s["2013/01/01 10H":], s[3600:]) + tm.assert_series_equal(s[:"2013/01/01 09:30"], s[:1860]) + for d in ["2013/01/01", "2013/01", "2013"]: + tm.assert_series_equal(s[d:], s) + + @pytest.mark.parametrize("make_range", [date_range, period_range]) + def test_range_slice_outofbounds(self, make_range): + # GH#5407 + idx = make_range(start="2013/10/01", freq="D", periods=10) + + df = DataFrame({"units": [100 + i for i in range(10)]}, index=idx) + empty = DataFrame(index=idx[:0], columns=["units"]) + empty["units"] = empty["units"].astype("int64") + + tm.assert_frame_equal(df["2013/09/01":"2013/09/30"], empty) + tm.assert_frame_equal(df["2013/09/30":"2013/10/02"], df.iloc[:2]) + tm.assert_frame_equal(df["2013/10/01":"2013/10/02"], df.iloc[:2]) + tm.assert_frame_equal(df["2013/10/02":"2013/09/30"], empty) + tm.assert_frame_equal(df["2013/10/15":"2013/10/17"], empty) + tm.assert_frame_equal(df["2013-06":"2013-09"], empty) + tm.assert_frame_equal(df["2013-11":"2013-12"], empty) + + @pytest.mark.parametrize("make_range", [date_range, period_range]) + def test_maybe_cast_slice_bound(self, make_range, frame_or_series): + idx = make_range(start="2013/10/01", freq="D", periods=10) + + obj = DataFrame({"units": [100 + i for i in range(10)]}, index=idx) + obj = tm.get_obj(obj, frame_or_series) + + msg = ( + f"cannot do slice indexing on {type(idx).__name__} with " + r"these indexers \[foo\] of type str" + ) + + # Check the lower-level calls are raising where expected. + with pytest.raises(TypeError, match=msg): + idx._maybe_cast_slice_bound("foo", "left") + with pytest.raises(TypeError, match=msg): + idx.get_slice_bound("foo", "left") + + with pytest.raises(TypeError, match=msg): + obj["2013/09/30":"foo"] + with pytest.raises(TypeError, match=msg): + obj["foo":"2013/09/30"] + with pytest.raises(TypeError, match=msg): + obj.loc["2013/09/30":"foo"] + with pytest.raises(TypeError, match=msg): + obj.loc["foo":"2013/09/30"] + + def test_partial_slice_doesnt_require_monotonicity(self): + # See also: DatetimeIndex test ofm the same name + dti = date_range("2014-01-01", periods=30, freq="30D") + pi = dti.to_period("D") + + ser_montonic = Series(np.arange(30), index=pi) + + shuffler = list(range(0, 30, 2)) + list(range(1, 31, 2)) + ser = ser_montonic.iloc[shuffler] + nidx = ser.index + + # Manually identified locations of year==2014 + indexer_2014 = np.array( + [0, 1, 2, 3, 4, 5, 6, 15, 16, 17, 18, 19, 20], dtype=np.intp + ) + assert (nidx[indexer_2014].year == 2014).all() + assert not (nidx[~indexer_2014].year == 2014).any() + + result = nidx.get_loc("2014") + tm.assert_numpy_array_equal(result, indexer_2014) + + expected = ser.iloc[indexer_2014] + result = ser.loc["2014"] + tm.assert_series_equal(result, expected) + + result = ser["2014"] + tm.assert_series_equal(result, expected) + + # Manually identified locations where ser.index is within Mat 2015 + indexer_may2015 = np.array([23], dtype=np.intp) + assert nidx[23].year == 2015 and nidx[23].month == 5 + + result = nidx.get_loc("May 2015") + tm.assert_numpy_array_equal(result, indexer_may2015) + + expected = ser.iloc[indexer_may2015] + result = ser.loc["May 2015"] + tm.assert_series_equal(result, expected) + + result = ser["May 2015"] + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_period.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_period.py new file mode 100644 index 0000000000000000000000000000000000000000..77b8e76894647f25ea94f8bf1dce460d0b2a165f --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_period.py @@ -0,0 +1,231 @@ +import numpy as np +import pytest + +from pandas import ( + Index, + NaT, + Period, + PeriodIndex, + Series, + date_range, + offsets, + period_range, +) +import pandas._testing as tm + + +class TestPeriodIndex: + def test_view_asi8(self): + idx = PeriodIndex([], freq="M") + + exp = np.array([], dtype=np.int64) + tm.assert_numpy_array_equal(idx.view("i8"), exp) + tm.assert_numpy_array_equal(idx.asi8, exp) + + idx = PeriodIndex(["2011-01", NaT], freq="M") + + exp = np.array([492, -9223372036854775808], dtype=np.int64) + tm.assert_numpy_array_equal(idx.view("i8"), exp) + tm.assert_numpy_array_equal(idx.asi8, exp) + + exp = np.array([14975, -9223372036854775808], dtype=np.int64) + idx = PeriodIndex(["2011-01-01", NaT], freq="D") + tm.assert_numpy_array_equal(idx.view("i8"), exp) + tm.assert_numpy_array_equal(idx.asi8, exp) + + def test_values(self): + idx = PeriodIndex([], freq="M") + + exp = np.array([], dtype=object) + tm.assert_numpy_array_equal(idx.values, exp) + tm.assert_numpy_array_equal(idx.to_numpy(), exp) + + exp = np.array([], dtype=np.int64) + tm.assert_numpy_array_equal(idx.asi8, exp) + + idx = PeriodIndex(["2011-01", NaT], freq="M") + + exp = np.array([Period("2011-01", freq="M"), NaT], dtype=object) + tm.assert_numpy_array_equal(idx.values, exp) + tm.assert_numpy_array_equal(idx.to_numpy(), exp) + exp = np.array([492, -9223372036854775808], dtype=np.int64) + tm.assert_numpy_array_equal(idx.asi8, exp) + + idx = PeriodIndex(["2011-01-01", NaT], freq="D") + + exp = np.array([Period("2011-01-01", freq="D"), NaT], dtype=object) + tm.assert_numpy_array_equal(idx.values, exp) + tm.assert_numpy_array_equal(idx.to_numpy(), exp) + exp = np.array([14975, -9223372036854775808], dtype=np.int64) + tm.assert_numpy_array_equal(idx.asi8, exp) + + @pytest.mark.parametrize( + "field", + [ + "year", + "month", + "day", + "hour", + "minute", + "second", + "weekofyear", + "week", + "dayofweek", + "day_of_week", + "dayofyear", + "day_of_year", + "quarter", + "qyear", + "days_in_month", + ], + ) + @pytest.mark.parametrize( + "periodindex", + [ + period_range(freq="Y", start="1/1/2001", end="12/1/2005"), + period_range(freq="Q", start="1/1/2001", end="12/1/2002"), + period_range(freq="M", start="1/1/2001", end="1/1/2002"), + period_range(freq="D", start="12/1/2001", end="6/1/2001"), + period_range(freq="h", start="12/31/2001", end="1/1/2002 23:00"), + period_range(freq="Min", start="12/31/2001", end="1/1/2002 00:20"), + period_range( + freq="s", start="12/31/2001 00:00:00", end="12/31/2001 00:05:00" + ), + period_range(end=Period("2006-12-31", "W"), periods=10), + ], + ) + def test_fields(self, periodindex, field): + periods = list(periodindex) + ser = Series(periodindex) + + field_idx = getattr(periodindex, field) + assert len(periodindex) == len(field_idx) + for x, val in zip(periods, field_idx): + assert getattr(x, field) == val + + if len(ser) == 0: + return + + field_s = getattr(ser.dt, field) + assert len(periodindex) == len(field_s) + for x, val in zip(periods, field_s): + assert getattr(x, field) == val + + def test_is_(self): + create_index = lambda: period_range(freq="Y", start="1/1/2001", end="12/1/2009") + index = create_index() + assert index.is_(index) + assert not index.is_(create_index()) + assert index.is_(index.view()) + assert index.is_(index.view().view().view().view().view()) + assert index.view().is_(index) + ind2 = index.view() + index.name = "Apple" + assert ind2.is_(index) + assert not index.is_(index[:]) + assert not index.is_(index.asfreq("M")) + assert not index.is_(index.asfreq("Y")) + + assert not index.is_(index - 2) + assert not index.is_(index - 0) + + def test_index_unique(self): + idx = PeriodIndex([2000, 2007, 2007, 2009, 2009], freq="Y-JUN") + expected = PeriodIndex([2000, 2007, 2009], freq="Y-JUN") + tm.assert_index_equal(idx.unique(), expected) + assert idx.nunique() == 3 + + def test_pindex_fieldaccessor_nat(self): + idx = PeriodIndex( + ["2011-01", "2011-02", "NaT", "2012-03", "2012-04"], freq="D", name="name" + ) + + exp = Index([2011, 2011, -1, 2012, 2012], dtype=np.int64, name="name") + tm.assert_index_equal(idx.year, exp) + exp = Index([1, 2, -1, 3, 4], dtype=np.int64, name="name") + tm.assert_index_equal(idx.month, exp) + + def test_pindex_multiples(self): + expected = PeriodIndex( + ["2011-01", "2011-03", "2011-05", "2011-07", "2011-09", "2011-11"], + freq="2M", + ) + + pi = period_range(start="1/1/11", end="12/31/11", freq="2M") + tm.assert_index_equal(pi, expected) + assert pi.freq == offsets.MonthEnd(2) + assert pi.freqstr == "2M" + + pi = period_range(start="1/1/11", periods=6, freq="2M") + tm.assert_index_equal(pi, expected) + assert pi.freq == offsets.MonthEnd(2) + assert pi.freqstr == "2M" + + @pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") + @pytest.mark.filterwarnings("ignore:Period with BDay freq:FutureWarning") + def test_iteration(self): + index = period_range(start="1/1/10", periods=4, freq="B") + + result = list(index) + assert isinstance(result[0], Period) + assert result[0].freq == index.freq + + def test_with_multi_index(self): + # #1705 + index = date_range("1/1/2012", periods=4, freq="12h") + index_as_arrays = [index.to_period(freq="D"), index.hour] + + s = Series([0, 1, 2, 3], index_as_arrays) + + assert isinstance(s.index.levels[0], PeriodIndex) + + assert isinstance(s.index.values[0][0], Period) + + def test_map(self): + # test_map_dictlike generally tests + + index = PeriodIndex([2005, 2007, 2009], freq="Y") + result = index.map(lambda x: x.ordinal) + exp = Index([x.ordinal for x in index]) + tm.assert_index_equal(result, exp) + + +def test_maybe_convert_timedelta(): + pi = PeriodIndex(["2000", "2001"], freq="D") + offset = offsets.Day(2) + assert pi._maybe_convert_timedelta(offset) == 2 + assert pi._maybe_convert_timedelta(2) == 2 + + offset = offsets.BusinessDay() + msg = r"Input has different freq=B from PeriodIndex\(freq=D\)" + with pytest.raises(ValueError, match=msg): + pi._maybe_convert_timedelta(offset) + + +@pytest.mark.parametrize("array", [True, False]) +def test_dunder_array(array): + obj = PeriodIndex(["2000-01-01", "2001-01-01"], freq="D") + if array: + obj = obj._data + + expected = np.array([obj[0], obj[1]], dtype=object) + result = np.array(obj) + tm.assert_numpy_array_equal(result, expected) + + result = np.asarray(obj) + tm.assert_numpy_array_equal(result, expected) + + expected = obj.asi8 + for dtype in ["i8", "int64", np.int64]: + result = np.array(obj, dtype=dtype) + tm.assert_numpy_array_equal(result, expected) + + result = np.asarray(obj, dtype=dtype) + tm.assert_numpy_array_equal(result, expected) + + for dtype in ["float64", "int32", "uint64"]: + msg = "argument must be" + with pytest.raises(TypeError, match=msg): + np.array(obj, dtype=dtype) + with pytest.raises(TypeError, match=msg): + np.array(obj, dtype=getattr(np, dtype)) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_period_range.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_period_range.py new file mode 100644 index 0000000000000000000000000000000000000000..6f8e6d07da8bf3c730ef1f82224388ba4b99ccb1 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_period_range.py @@ -0,0 +1,241 @@ +import numpy as np +import pytest + +from pandas import ( + NaT, + Period, + PeriodIndex, + date_range, + period_range, +) +import pandas._testing as tm + + +class TestPeriodRangeKeywords: + def test_required_arguments(self): + msg = ( + "Of the three parameters: start, end, and periods, exactly two " + "must be specified" + ) + with pytest.raises(ValueError, match=msg): + period_range("2011-1-1", "2012-1-1", "B") + + def test_required_arguments2(self): + start = Period("02-Apr-2005", "D") + msg = ( + "Of the three parameters: start, end, and periods, exactly two " + "must be specified" + ) + with pytest.raises(ValueError, match=msg): + period_range(start=start) + + def test_required_arguments3(self): + # not enough params + msg = ( + "Of the three parameters: start, end, and periods, " + "exactly two must be specified" + ) + with pytest.raises(ValueError, match=msg): + period_range(start="2017Q1") + + with pytest.raises(ValueError, match=msg): + period_range(end="2017Q1") + + with pytest.raises(ValueError, match=msg): + period_range(periods=5) + + with pytest.raises(ValueError, match=msg): + period_range() + + def test_required_arguments_too_many(self): + msg = ( + "Of the three parameters: start, end, and periods, " + "exactly two must be specified" + ) + with pytest.raises(ValueError, match=msg): + period_range(start="2017Q1", end="2018Q1", periods=8, freq="Q") + + def test_start_end_non_nat(self): + # start/end NaT + msg = "start and end must not be NaT" + with pytest.raises(ValueError, match=msg): + period_range(start=NaT, end="2018Q1") + with pytest.raises(ValueError, match=msg): + period_range(start=NaT, end="2018Q1", freq="Q") + + with pytest.raises(ValueError, match=msg): + period_range(start="2017Q1", end=NaT) + with pytest.raises(ValueError, match=msg): + period_range(start="2017Q1", end=NaT, freq="Q") + + def test_periods_requires_integer(self): + # invalid periods param + msg = "periods must be a number, got foo" + with pytest.raises(TypeError, match=msg): + period_range(start="2017Q1", periods="foo") + + +class TestPeriodRange: + @pytest.mark.parametrize( + "freq_offset, freq_period", + [ + ("D", "D"), + ("W", "W"), + ("QE", "Q"), + ("YE", "Y"), + ], + ) + def test_construction_from_string(self, freq_offset, freq_period): + # non-empty + expected = date_range( + start="2017-01-01", periods=5, freq=freq_offset, name="foo" + ).to_period() + start, end = str(expected[0]), str(expected[-1]) + + result = period_range(start=start, end=end, freq=freq_period, name="foo") + tm.assert_index_equal(result, expected) + + result = period_range(start=start, periods=5, freq=freq_period, name="foo") + tm.assert_index_equal(result, expected) + + result = period_range(end=end, periods=5, freq=freq_period, name="foo") + tm.assert_index_equal(result, expected) + + # empty + expected = PeriodIndex([], freq=freq_period, name="foo") + + result = period_range(start=start, periods=0, freq=freq_period, name="foo") + tm.assert_index_equal(result, expected) + + result = period_range(end=end, periods=0, freq=freq_period, name="foo") + tm.assert_index_equal(result, expected) + + result = period_range(start=end, end=start, freq=freq_period, name="foo") + tm.assert_index_equal(result, expected) + + def test_construction_from_string_monthly(self): + # non-empty + expected = date_range( + start="2017-01-01", periods=5, freq="ME", name="foo" + ).to_period() + start, end = str(expected[0]), str(expected[-1]) + + result = period_range(start=start, end=end, freq="M", name="foo") + tm.assert_index_equal(result, expected) + + result = period_range(start=start, periods=5, freq="M", name="foo") + tm.assert_index_equal(result, expected) + + result = period_range(end=end, periods=5, freq="M", name="foo") + tm.assert_index_equal(result, expected) + + # empty + expected = PeriodIndex([], freq="M", name="foo") + + result = period_range(start=start, periods=0, freq="M", name="foo") + tm.assert_index_equal(result, expected) + + result = period_range(end=end, periods=0, freq="M", name="foo") + tm.assert_index_equal(result, expected) + + result = period_range(start=end, end=start, freq="M", name="foo") + tm.assert_index_equal(result, expected) + + def test_construction_from_period(self): + # upsampling + start, end = Period("2017Q1", freq="Q"), Period("2018Q1", freq="Q") + expected = date_range( + start="2017-03-31", end="2018-03-31", freq="ME", name="foo" + ).to_period() + result = period_range(start=start, end=end, freq="M", name="foo") + tm.assert_index_equal(result, expected) + + # downsampling + start = Period("2017-1", freq="M") + end = Period("2019-12", freq="M") + expected = date_range( + start="2017-01-31", end="2019-12-31", freq="QE", name="foo" + ).to_period() + result = period_range(start=start, end=end, freq="Q", name="foo") + tm.assert_index_equal(result, expected) + + # test for issue # 21793 + start = Period("2017Q1", freq="Q") + end = Period("2018Q1", freq="Q") + idx = period_range(start=start, end=end, freq="Q", name="foo") + result = idx == idx.values + expected = np.array([True, True, True, True, True]) + tm.assert_numpy_array_equal(result, expected) + + # empty + expected = PeriodIndex([], freq="W", name="foo") + + result = period_range(start=start, periods=0, freq="W", name="foo") + tm.assert_index_equal(result, expected) + + result = period_range(end=end, periods=0, freq="W", name="foo") + tm.assert_index_equal(result, expected) + + result = period_range(start=end, end=start, freq="W", name="foo") + tm.assert_index_equal(result, expected) + + def test_mismatched_start_end_freq_raises(self): + depr_msg = "Period with BDay freq is deprecated" + msg = "'w' is deprecated and will be removed in a future version." + with tm.assert_produces_warning(FutureWarning, match=msg): + end_w = Period("2006-12-31", "1w") + + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + start_b = Period("02-Apr-2005", "B") + end_b = Period("2005-05-01", "B") + + msg = "start and end must have same freq" + with pytest.raises(ValueError, match=msg): + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + period_range(start=start_b, end=end_w) + + # without mismatch we are OK + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + period_range(start=start_b, end=end_b) + + +class TestPeriodRangeDisallowedFreqs: + def test_constructor_U(self): + # U was used as undefined period + with pytest.raises(ValueError, match="Invalid frequency: X"): + period_range("2007-1-1", periods=500, freq="X") + + @pytest.mark.parametrize( + "freq,freq_depr", + [ + ("2Y", "2A"), + ("2Y", "2a"), + ("2Y-AUG", "2A-AUG"), + ("2Y-AUG", "2A-aug"), + ], + ) + def test_a_deprecated_from_time_series(self, freq, freq_depr): + # GH#52536 + msg = f"'{freq_depr[1:]}' is deprecated and will be removed in a " + f"future version. Please use '{freq[1:]}' instead." + + with tm.assert_produces_warning(FutureWarning, match=msg): + period_range(freq=freq_depr, start="1/1/2001", end="12/1/2009") + + @pytest.mark.parametrize("freq_depr", ["2H", "2MIN", "2S", "2US", "2NS"]) + def test_uppercase_freq_deprecated_from_time_series(self, freq_depr): + # GH#52536, GH#54939 + msg = f"'{freq_depr[1:]}' is deprecated and will be removed in a " + f"future version. Please use '{freq_depr.lower()[1:]}' instead." + + with tm.assert_produces_warning(FutureWarning, match=msg): + period_range("2020-01-01 00:00:00 00:00", periods=2, freq=freq_depr) + + @pytest.mark.parametrize("freq_depr", ["2m", "2q-sep", "2y", "2w"]) + def test_lowercase_freq_deprecated_from_time_series(self, freq_depr): + # GH#52536, GH#54939 + msg = f"'{freq_depr[1:]}' is deprecated and will be removed in a " + f"future version. Please use '{freq_depr.upper()[1:]}' instead." + + with tm.assert_produces_warning(FutureWarning, match=msg): + period_range(freq=freq_depr, start="1/1/2001", end="12/1/2009") diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_pickle.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_pickle.py new file mode 100644 index 0000000000000000000000000000000000000000..7d359fdabb6f1229e713e45452c6816d9f5743e9 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_pickle.py @@ -0,0 +1,26 @@ +import numpy as np +import pytest + +from pandas import ( + NaT, + PeriodIndex, + period_range, +) +import pandas._testing as tm + +from pandas.tseries import offsets + + +class TestPickle: + @pytest.mark.parametrize("freq", ["D", "M", "Y"]) + def test_pickle_round_trip(self, freq): + idx = PeriodIndex(["2016-05-16", "NaT", NaT, np.nan], freq=freq) + result = tm.round_trip_pickle(idx) + tm.assert_index_equal(result, idx) + + def test_pickle_freq(self): + # GH#2891 + prng = period_range("1/1/2011", "1/1/2012", freq="M") + new_prng = tm.round_trip_pickle(prng) + assert new_prng.freq == offsets.MonthEnd() + assert new_prng.freqstr == "M" diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_resolution.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_resolution.py new file mode 100644 index 0000000000000000000000000000000000000000..680bdaa2e2a44c9603c6465274e4f4cea35e8701 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_resolution.py @@ -0,0 +1,23 @@ +import pytest + +import pandas as pd + + +class TestResolution: + @pytest.mark.parametrize( + "freq,expected", + [ + ("Y", "year"), + ("Q", "quarter"), + ("M", "month"), + ("D", "day"), + ("h", "hour"), + ("min", "minute"), + ("s", "second"), + ("ms", "millisecond"), + ("us", "microsecond"), + ], + ) + def test_resolution(self, freq, expected): + idx = pd.period_range(start="2013-04-01", periods=30, freq=freq) + assert idx.resolution == expected diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_scalar_compat.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_scalar_compat.py new file mode 100644 index 0000000000000000000000000000000000000000..d8afd29ff31c558a7e99861852b08d86deaa9fac --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_scalar_compat.py @@ -0,0 +1,38 @@ +"""Tests for PeriodIndex behaving like a vectorized Period scalar""" + +import pytest + +from pandas import ( + Timedelta, + date_range, + period_range, +) +import pandas._testing as tm + + +class TestPeriodIndexOps: + def test_start_time(self): + # GH#17157 + index = period_range(freq="M", start="2016-01-01", end="2016-05-31") + expected_index = date_range("2016-01-01", end="2016-05-31", freq="MS") + tm.assert_index_equal(index.start_time, expected_index) + + def test_end_time(self): + # GH#17157 + index = period_range(freq="M", start="2016-01-01", end="2016-05-31") + expected_index = date_range("2016-01-01", end="2016-05-31", freq="ME") + expected_index += Timedelta(1, "D") - Timedelta(1, "ns") + tm.assert_index_equal(index.end_time, expected_index) + + @pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") + @pytest.mark.filterwarnings( + "ignore:Period with BDay freq is deprecated:FutureWarning" + ) + def test_end_time_business_friday(self): + # GH#34449 + pi = period_range("1990-01-05", freq="B", periods=1) + result = pi.end_time + + dti = date_range("1990-01-05", freq="D", periods=1)._with_freq(None) + expected = dti + Timedelta(days=1, nanoseconds=-1) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_searchsorted.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_searchsorted.py new file mode 100644 index 0000000000000000000000000000000000000000..9b02a2f35fd0193bbc8133373299a0ac2cea38ea --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_searchsorted.py @@ -0,0 +1,80 @@ +import numpy as np +import pytest + +from pandas._libs.tslibs import IncompatibleFrequency + +from pandas import ( + NaT, + Period, + PeriodIndex, +) +import pandas._testing as tm + + +class TestSearchsorted: + @pytest.mark.parametrize("freq", ["D", "2D"]) + def test_searchsorted(self, freq): + pidx = PeriodIndex( + ["2014-01-01", "2014-01-02", "2014-01-03", "2014-01-04", "2014-01-05"], + freq=freq, + ) + + p1 = Period("2014-01-01", freq=freq) + assert pidx.searchsorted(p1) == 0 + + p2 = Period("2014-01-04", freq=freq) + assert pidx.searchsorted(p2) == 3 + + assert pidx.searchsorted(NaT) == 5 + + msg = "Input has different freq=h from PeriodArray" + with pytest.raises(IncompatibleFrequency, match=msg): + pidx.searchsorted(Period("2014-01-01", freq="h")) + + msg = "Input has different freq=5D from PeriodArray" + with pytest.raises(IncompatibleFrequency, match=msg): + pidx.searchsorted(Period("2014-01-01", freq="5D")) + + def test_searchsorted_different_argument_classes(self, listlike_box): + pidx = PeriodIndex( + ["2014-01-01", "2014-01-02", "2014-01-03", "2014-01-04", "2014-01-05"], + freq="D", + ) + result = pidx.searchsorted(listlike_box(pidx)) + expected = np.arange(len(pidx), dtype=result.dtype) + tm.assert_numpy_array_equal(result, expected) + + result = pidx._data.searchsorted(listlike_box(pidx)) + tm.assert_numpy_array_equal(result, expected) + + def test_searchsorted_invalid(self): + pidx = PeriodIndex( + ["2014-01-01", "2014-01-02", "2014-01-03", "2014-01-04", "2014-01-05"], + freq="D", + ) + + other = np.array([0, 1], dtype=np.int64) + + msg = "|".join( + [ + "searchsorted requires compatible dtype or scalar", + "value should be a 'Period', 'NaT', or array of those. Got", + ] + ) + with pytest.raises(TypeError, match=msg): + pidx.searchsorted(other) + + with pytest.raises(TypeError, match=msg): + pidx.searchsorted(other.astype("timedelta64[ns]")) + + with pytest.raises(TypeError, match=msg): + pidx.searchsorted(np.timedelta64(4)) + + with pytest.raises(TypeError, match=msg): + pidx.searchsorted(np.timedelta64("NaT", "ms")) + + with pytest.raises(TypeError, match=msg): + pidx.searchsorted(np.datetime64(4, "ns")) + + with pytest.raises(TypeError, match=msg): + pidx.searchsorted(np.datetime64("NaT", "ns")) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_setops.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_setops.py new file mode 100644 index 0000000000000000000000000000000000000000..2fa7e8cd0d2df5982cc0c798fbfba4e0230df367 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_setops.py @@ -0,0 +1,363 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + PeriodIndex, + date_range, + period_range, +) +import pandas._testing as tm + + +def _permute(obj): + return obj.take(np.random.default_rng(2).permutation(len(obj))) + + +class TestPeriodIndex: + def test_union(self, sort): + # union + other1 = period_range("1/1/2000", freq="D", periods=5) + rng1 = period_range("1/6/2000", freq="D", periods=5) + expected1 = PeriodIndex( + [ + "2000-01-06", + "2000-01-07", + "2000-01-08", + "2000-01-09", + "2000-01-10", + "2000-01-01", + "2000-01-02", + "2000-01-03", + "2000-01-04", + "2000-01-05", + ], + freq="D", + ) + + rng2 = period_range("1/1/2000", freq="D", periods=5) + other2 = period_range("1/4/2000", freq="D", periods=5) + expected2 = period_range("1/1/2000", freq="D", periods=8) + + rng3 = period_range("1/1/2000", freq="D", periods=5) + other3 = PeriodIndex([], freq="D") + expected3 = period_range("1/1/2000", freq="D", periods=5) + + rng4 = period_range("2000-01-01 09:00", freq="h", periods=5) + other4 = period_range("2000-01-02 09:00", freq="h", periods=5) + expected4 = PeriodIndex( + [ + "2000-01-01 09:00", + "2000-01-01 10:00", + "2000-01-01 11:00", + "2000-01-01 12:00", + "2000-01-01 13:00", + "2000-01-02 09:00", + "2000-01-02 10:00", + "2000-01-02 11:00", + "2000-01-02 12:00", + "2000-01-02 13:00", + ], + freq="h", + ) + + rng5 = PeriodIndex( + ["2000-01-01 09:01", "2000-01-01 09:03", "2000-01-01 09:05"], freq="min" + ) + other5 = PeriodIndex( + ["2000-01-01 09:01", "2000-01-01 09:05", "2000-01-01 09:08"], freq="min" + ) + expected5 = PeriodIndex( + [ + "2000-01-01 09:01", + "2000-01-01 09:03", + "2000-01-01 09:05", + "2000-01-01 09:08", + ], + freq="min", + ) + + rng6 = period_range("2000-01-01", freq="M", periods=7) + other6 = period_range("2000-04-01", freq="M", periods=7) + expected6 = period_range("2000-01-01", freq="M", periods=10) + + rng7 = period_range("2003-01-01", freq="Y", periods=5) + other7 = period_range("1998-01-01", freq="Y", periods=8) + expected7 = PeriodIndex( + [ + "2003", + "2004", + "2005", + "2006", + "2007", + "1998", + "1999", + "2000", + "2001", + "2002", + ], + freq="Y", + ) + + rng8 = PeriodIndex( + ["1/3/2000", "1/2/2000", "1/1/2000", "1/5/2000", "1/4/2000"], freq="D" + ) + other8 = period_range("1/6/2000", freq="D", periods=5) + expected8 = PeriodIndex( + [ + "1/3/2000", + "1/2/2000", + "1/1/2000", + "1/5/2000", + "1/4/2000", + "1/6/2000", + "1/7/2000", + "1/8/2000", + "1/9/2000", + "1/10/2000", + ], + freq="D", + ) + + for rng, other, expected in [ + (rng1, other1, expected1), + (rng2, other2, expected2), + (rng3, other3, expected3), + (rng4, other4, expected4), + (rng5, other5, expected5), + (rng6, other6, expected6), + (rng7, other7, expected7), + (rng8, other8, expected8), + ]: + result_union = rng.union(other, sort=sort) + if sort is None: + expected = expected.sort_values() + tm.assert_index_equal(result_union, expected) + + def test_union_misc(self, sort): + index = period_range("1/1/2000", "1/20/2000", freq="D") + + result = index[:-5].union(index[10:], sort=sort) + tm.assert_index_equal(result, index) + + # not in order + result = _permute(index[:-5]).union(_permute(index[10:]), sort=sort) + if sort is False: + tm.assert_index_equal(result.sort_values(), index) + else: + tm.assert_index_equal(result, index) + + # cast if different frequencies + index = period_range("1/1/2000", "1/20/2000", freq="D") + index2 = period_range("1/1/2000", "1/20/2000", freq="W-WED") + result = index.union(index2, sort=sort) + expected = index.astype(object).union(index2.astype(object), sort=sort) + tm.assert_index_equal(result, expected) + + def test_intersection(self, sort): + index = period_range("1/1/2000", "1/20/2000", freq="D") + + result = index[:-5].intersection(index[10:], sort=sort) + tm.assert_index_equal(result, index[10:-5]) + + # not in order + left = _permute(index[:-5]) + right = _permute(index[10:]) + result = left.intersection(right, sort=sort) + if sort is False: + tm.assert_index_equal(result.sort_values(), index[10:-5]) + else: + tm.assert_index_equal(result, index[10:-5]) + + # cast if different frequencies + index = period_range("1/1/2000", "1/20/2000", freq="D") + index2 = period_range("1/1/2000", "1/20/2000", freq="W-WED") + + result = index.intersection(index2, sort=sort) + expected = pd.Index([], dtype=object) + tm.assert_index_equal(result, expected) + + index3 = period_range("1/1/2000", "1/20/2000", freq="2D") + result = index.intersection(index3, sort=sort) + tm.assert_index_equal(result, expected) + + def test_intersection_cases(self, sort): + base = period_range("6/1/2000", "6/30/2000", freq="D", name="idx") + + # if target has the same name, it is preserved + rng2 = period_range("5/15/2000", "6/20/2000", freq="D", name="idx") + expected2 = period_range("6/1/2000", "6/20/2000", freq="D", name="idx") + + # if target name is different, it will be reset + rng3 = period_range("5/15/2000", "6/20/2000", freq="D", name="other") + expected3 = period_range("6/1/2000", "6/20/2000", freq="D", name=None) + + rng4 = period_range("7/1/2000", "7/31/2000", freq="D", name="idx") + expected4 = PeriodIndex([], name="idx", freq="D") + + for rng, expected in [ + (rng2, expected2), + (rng3, expected3), + (rng4, expected4), + ]: + result = base.intersection(rng, sort=sort) + tm.assert_index_equal(result, expected) + assert result.name == expected.name + assert result.freq == expected.freq + + # non-monotonic + base = PeriodIndex( + ["2011-01-05", "2011-01-04", "2011-01-02", "2011-01-03"], + freq="D", + name="idx", + ) + + rng2 = PeriodIndex( + ["2011-01-04", "2011-01-02", "2011-02-02", "2011-02-03"], + freq="D", + name="idx", + ) + expected2 = PeriodIndex(["2011-01-04", "2011-01-02"], freq="D", name="idx") + + rng3 = PeriodIndex( + ["2011-01-04", "2011-01-02", "2011-02-02", "2011-02-03"], + freq="D", + name="other", + ) + expected3 = PeriodIndex(["2011-01-04", "2011-01-02"], freq="D", name=None) + + rng4 = period_range("7/1/2000", "7/31/2000", freq="D", name="idx") + expected4 = PeriodIndex([], freq="D", name="idx") + + for rng, expected in [ + (rng2, expected2), + (rng3, expected3), + (rng4, expected4), + ]: + result = base.intersection(rng, sort=sort) + if sort is None: + expected = expected.sort_values() + tm.assert_index_equal(result, expected) + assert result.name == expected.name + assert result.freq == "D" + + # empty same freq + rng = date_range("6/1/2000", "6/15/2000", freq="min") + result = rng[0:0].intersection(rng) + assert len(result) == 0 + + result = rng.intersection(rng[0:0]) + assert len(result) == 0 + + def test_difference(self, sort): + # diff + period_rng = ["1/3/2000", "1/2/2000", "1/1/2000", "1/5/2000", "1/4/2000"] + rng1 = PeriodIndex(period_rng, freq="D") + other1 = period_range("1/6/2000", freq="D", periods=5) + expected1 = rng1 + + rng2 = PeriodIndex(period_rng, freq="D") + other2 = period_range("1/4/2000", freq="D", periods=5) + expected2 = PeriodIndex(["1/3/2000", "1/2/2000", "1/1/2000"], freq="D") + + rng3 = PeriodIndex(period_rng, freq="D") + other3 = PeriodIndex([], freq="D") + expected3 = rng3 + + period_rng = [ + "2000-01-01 10:00", + "2000-01-01 09:00", + "2000-01-01 12:00", + "2000-01-01 11:00", + "2000-01-01 13:00", + ] + rng4 = PeriodIndex(period_rng, freq="h") + other4 = period_range("2000-01-02 09:00", freq="h", periods=5) + expected4 = rng4 + + rng5 = PeriodIndex( + ["2000-01-01 09:03", "2000-01-01 09:01", "2000-01-01 09:05"], freq="min" + ) + other5 = PeriodIndex(["2000-01-01 09:01", "2000-01-01 09:05"], freq="min") + expected5 = PeriodIndex(["2000-01-01 09:03"], freq="min") + + period_rng = [ + "2000-02-01", + "2000-01-01", + "2000-06-01", + "2000-07-01", + "2000-05-01", + "2000-03-01", + "2000-04-01", + ] + rng6 = PeriodIndex(period_rng, freq="M") + other6 = period_range("2000-04-01", freq="M", periods=7) + expected6 = PeriodIndex(["2000-02-01", "2000-01-01", "2000-03-01"], freq="M") + + period_rng = ["2003", "2007", "2006", "2005", "2004"] + rng7 = PeriodIndex(period_rng, freq="Y") + other7 = period_range("1998-01-01", freq="Y", periods=8) + expected7 = PeriodIndex(["2007", "2006"], freq="Y") + + for rng, other, expected in [ + (rng1, other1, expected1), + (rng2, other2, expected2), + (rng3, other3, expected3), + (rng4, other4, expected4), + (rng5, other5, expected5), + (rng6, other6, expected6), + (rng7, other7, expected7), + ]: + result_difference = rng.difference(other, sort=sort) + if sort is None and len(other): + # We dont sort (yet?) when empty GH#24959 + expected = expected.sort_values() + tm.assert_index_equal(result_difference, expected) + + def test_difference_freq(self, sort): + # GH14323: difference of Period MUST preserve frequency + # but the ability to union results must be preserved + + index = period_range("20160920", "20160925", freq="D") + + other = period_range("20160921", "20160924", freq="D") + expected = PeriodIndex(["20160920", "20160925"], freq="D") + idx_diff = index.difference(other, sort) + tm.assert_index_equal(idx_diff, expected) + tm.assert_attr_equal("freq", idx_diff, expected) + + other = period_range("20160922", "20160925", freq="D") + idx_diff = index.difference(other, sort) + expected = PeriodIndex(["20160920", "20160921"], freq="D") + tm.assert_index_equal(idx_diff, expected) + tm.assert_attr_equal("freq", idx_diff, expected) + + def test_intersection_equal_duplicates(self): + # GH#38302 + idx = period_range("2011-01-01", periods=2) + idx_dup = idx.append(idx) + result = idx_dup.intersection(idx_dup) + tm.assert_index_equal(result, idx) + + @pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") + def test_union_duplicates(self): + # GH#36289 + idx = period_range("2011-01-01", periods=2) + idx_dup = idx.append(idx) + + idx2 = period_range("2011-01-02", periods=2) + idx2_dup = idx2.append(idx2) + result = idx_dup.union(idx2_dup) + + expected = PeriodIndex( + [ + "2011-01-01", + "2011-01-01", + "2011-01-02", + "2011-01-02", + "2011-01-03", + "2011-01-03", + ], + freq="D", + ) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_tools.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_tools.py new file mode 100644 index 0000000000000000000000000000000000000000..f507e64d88b06b5862de3e98c693ab9f85306116 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/period/test_tools.py @@ -0,0 +1,52 @@ +import numpy as np +import pytest + +from pandas import ( + Period, + PeriodIndex, + period_range, +) +import pandas._testing as tm + + +class TestPeriodRepresentation: + """ + Wish to match NumPy units + """ + + @pytest.mark.parametrize( + "freq, base_date", + [ + ("W-THU", "1970-01-01"), + ("D", "1970-01-01"), + ("B", "1970-01-01"), + ("h", "1970-01-01"), + ("min", "1970-01-01"), + ("s", "1970-01-01"), + ("ms", "1970-01-01"), + ("us", "1970-01-01"), + ("ns", "1970-01-01"), + ("M", "1970-01"), + ("Y", 1970), + ], + ) + @pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") + @pytest.mark.filterwarnings( + "ignore:Period with BDay freq is deprecated:FutureWarning" + ) + def test_freq(self, freq, base_date): + rng = period_range(start=base_date, periods=10, freq=freq) + exp = np.arange(10, dtype=np.int64) + + tm.assert_numpy_array_equal(rng.asi8, exp) + + +class TestPeriodIndexConversion: + def test_tolist(self): + index = period_range(freq="Y", start="1/1/2001", end="12/1/2009") + rs = index.tolist() + for x in rs: + assert isinstance(x, Period) + + recon = PeriodIndex(rs) + tm.assert_index_equal(index, recon) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/ranges/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/ranges/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/ranges/test_constructors.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/ranges/test_constructors.py new file mode 100644 index 0000000000000000000000000000000000000000..5e6f16075ae636a3aa14e7443097f426bd6f998a --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/ranges/test_constructors.py @@ -0,0 +1,164 @@ +from datetime import datetime + +import numpy as np +import pytest + +from pandas import ( + Index, + RangeIndex, + Series, +) +import pandas._testing as tm + + +class TestRangeIndexConstructors: + @pytest.mark.parametrize("name", [None, "foo"]) + @pytest.mark.parametrize( + "args, kwargs, start, stop, step", + [ + ((5,), {}, 0, 5, 1), + ((1, 5), {}, 1, 5, 1), + ((1, 5, 2), {}, 1, 5, 2), + ((0,), {}, 0, 0, 1), + ((0, 0), {}, 0, 0, 1), + ((), {"start": 0}, 0, 0, 1), + ((), {"stop": 0}, 0, 0, 1), + ], + ) + def test_constructor(self, args, kwargs, start, stop, step, name): + result = RangeIndex(*args, name=name, **kwargs) + expected = Index(np.arange(start, stop, step, dtype=np.int64), name=name) + assert isinstance(result, RangeIndex) + assert result.name is name + assert result._range == range(start, stop, step) + tm.assert_index_equal(result, expected, exact="equiv") + + def test_constructor_invalid_args(self): + msg = "RangeIndex\\(\\.\\.\\.\\) must be called with integers" + with pytest.raises(TypeError, match=msg): + RangeIndex() + + with pytest.raises(TypeError, match=msg): + RangeIndex(name="Foo") + + # we don't allow on a bare Index + msg = ( + r"Index\(\.\.\.\) must be called with a collection of some " + r"kind, 0 was passed" + ) + with pytest.raises(TypeError, match=msg): + Index(0) + + @pytest.mark.parametrize( + "args", + [ + Index(["a", "b"]), + Series(["a", "b"]), + np.array(["a", "b"]), + [], + np.arange(0, 10), + np.array([1]), + [1], + ], + ) + def test_constructor_additional_invalid_args(self, args): + msg = f"Value needs to be a scalar value, was type {type(args).__name__}" + with pytest.raises(TypeError, match=msg): + RangeIndex(args) + + @pytest.mark.parametrize("args", ["foo", datetime(2000, 1, 1, 0, 0)]) + def test_constructor_invalid_args_wrong_type(self, args): + msg = f"Wrong type {type(args)} for value {args}" + with pytest.raises(TypeError, match=msg): + RangeIndex(args) + + def test_constructor_same(self): + # pass thru w and w/o copy + index = RangeIndex(1, 5, 2) + result = RangeIndex(index, copy=False) + assert result.identical(index) + + result = RangeIndex(index, copy=True) + tm.assert_index_equal(result, index, exact=True) + + result = RangeIndex(index) + tm.assert_index_equal(result, index, exact=True) + + with pytest.raises( + ValueError, + match="Incorrect `dtype` passed: expected signed integer, received float64", + ): + RangeIndex(index, dtype="float64") + + def test_constructor_range_object(self): + result = RangeIndex(range(1, 5, 2)) + expected = RangeIndex(1, 5, 2) + tm.assert_index_equal(result, expected, exact=True) + + def test_constructor_range(self): + result = RangeIndex.from_range(range(1, 5, 2)) + expected = RangeIndex(1, 5, 2) + tm.assert_index_equal(result, expected, exact=True) + + result = RangeIndex.from_range(range(5, 6)) + expected = RangeIndex(5, 6, 1) + tm.assert_index_equal(result, expected, exact=True) + + # an invalid range + result = RangeIndex.from_range(range(5, 1)) + expected = RangeIndex(0, 0, 1) + tm.assert_index_equal(result, expected, exact=True) + + result = RangeIndex.from_range(range(5)) + expected = RangeIndex(0, 5, 1) + tm.assert_index_equal(result, expected, exact=True) + + result = Index(range(1, 5, 2)) + expected = RangeIndex(1, 5, 2) + tm.assert_index_equal(result, expected, exact=True) + + msg = ( + r"(RangeIndex.)?from_range\(\) got an unexpected keyword argument( 'copy')?" + ) + with pytest.raises(TypeError, match=msg): + RangeIndex.from_range(range(10), copy=True) + + def test_constructor_name(self): + # GH#12288 + orig = RangeIndex(10) + orig.name = "original" + + copy = RangeIndex(orig) + copy.name = "copy" + + assert orig.name == "original" + assert copy.name == "copy" + + new = Index(copy) + assert new.name == "copy" + + new.name = "new" + assert orig.name == "original" + assert copy.name == "copy" + assert new.name == "new" + + def test_constructor_corner(self): + arr = np.array([1, 2, 3, 4], dtype=object) + index = RangeIndex(1, 5) + assert index.values.dtype == np.int64 + expected = Index(arr).astype("int64") + + tm.assert_index_equal(index, expected, exact="equiv") + + # non-int raise Exception + with pytest.raises(TypeError, match=r"Wrong type \"): + RangeIndex("1", "10", "1") + with pytest.raises(TypeError, match=r"Wrong type \"): + RangeIndex(1.1, 10.2, 1.3) + + # invalid passed type + with pytest.raises( + ValueError, + match="Incorrect `dtype` passed: expected signed integer, received float64", + ): + RangeIndex(1, 5, dtype="float64") diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/ranges/test_indexing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/ranges/test_indexing.py new file mode 100644 index 0000000000000000000000000000000000000000..6202074a11d7883c6f6aa984c23d7964e9042eb0 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/ranges/test_indexing.py @@ -0,0 +1,137 @@ +import numpy as np +import pytest + +from pandas import ( + Index, + RangeIndex, +) +import pandas._testing as tm + + +class TestGetIndexer: + def test_get_indexer(self): + index = RangeIndex(start=0, stop=20, step=2) + target = RangeIndex(10) + indexer = index.get_indexer(target) + expected = np.array([0, -1, 1, -1, 2, -1, 3, -1, 4, -1], dtype=np.intp) + tm.assert_numpy_array_equal(indexer, expected) + + def test_get_indexer_pad(self): + index = RangeIndex(start=0, stop=20, step=2) + target = RangeIndex(10) + indexer = index.get_indexer(target, method="pad") + expected = np.array([0, 0, 1, 1, 2, 2, 3, 3, 4, 4], dtype=np.intp) + tm.assert_numpy_array_equal(indexer, expected) + + def test_get_indexer_backfill(self): + index = RangeIndex(start=0, stop=20, step=2) + target = RangeIndex(10) + indexer = index.get_indexer(target, method="backfill") + expected = np.array([0, 1, 1, 2, 2, 3, 3, 4, 4, 5], dtype=np.intp) + tm.assert_numpy_array_equal(indexer, expected) + + def test_get_indexer_limit(self): + # GH#28631 + idx = RangeIndex(4) + target = RangeIndex(6) + result = idx.get_indexer(target, method="pad", limit=1) + expected = np.array([0, 1, 2, 3, 3, -1], dtype=np.intp) + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize("stop", [0, -1, -2]) + def test_get_indexer_decreasing(self, stop): + # GH#28678 + index = RangeIndex(7, stop, -3) + result = index.get_indexer(range(9)) + expected = np.array([-1, 2, -1, -1, 1, -1, -1, 0, -1], dtype=np.intp) + tm.assert_numpy_array_equal(result, expected) + + +class TestTake: + def test_take_preserve_name(self): + index = RangeIndex(1, 5, name="foo") + taken = index.take([3, 0, 1]) + assert index.name == taken.name + + def test_take_fill_value(self): + # GH#12631 + idx = RangeIndex(1, 4, name="xxx") + result = idx.take(np.array([1, 0, -1])) + expected = Index([2, 1, 3], dtype=np.int64, name="xxx") + tm.assert_index_equal(result, expected) + + # fill_value + msg = "Unable to fill values because RangeIndex cannot contain NA" + with pytest.raises(ValueError, match=msg): + idx.take(np.array([1, 0, -1]), fill_value=True) + + # allow_fill=False + result = idx.take(np.array([1, 0, -1]), allow_fill=False, fill_value=True) + expected = Index([2, 1, 3], dtype=np.int64, name="xxx") + tm.assert_index_equal(result, expected) + + msg = "Unable to fill values because RangeIndex cannot contain NA" + with pytest.raises(ValueError, match=msg): + idx.take(np.array([1, 0, -2]), fill_value=True) + with pytest.raises(ValueError, match=msg): + idx.take(np.array([1, 0, -5]), fill_value=True) + + def test_take_raises_index_error(self): + idx = RangeIndex(1, 4, name="xxx") + + msg = "index -5 is out of bounds for (axis 0 with )?size 3" + with pytest.raises(IndexError, match=msg): + idx.take(np.array([1, -5])) + + msg = "index -4 is out of bounds for (axis 0 with )?size 3" + with pytest.raises(IndexError, match=msg): + idx.take(np.array([1, -4])) + + # no errors + result = idx.take(np.array([1, -3])) + expected = Index([2, 1], dtype=np.int64, name="xxx") + tm.assert_index_equal(result, expected) + + def test_take_accepts_empty_array(self): + idx = RangeIndex(1, 4, name="foo") + result = idx.take(np.array([])) + expected = Index([], dtype=np.int64, name="foo") + tm.assert_index_equal(result, expected) + + # empty index + idx = RangeIndex(0, name="foo") + result = idx.take(np.array([])) + expected = Index([], dtype=np.int64, name="foo") + tm.assert_index_equal(result, expected) + + def test_take_accepts_non_int64_array(self): + idx = RangeIndex(1, 4, name="foo") + result = idx.take(np.array([2, 1], dtype=np.uint32)) + expected = Index([3, 2], dtype=np.int64, name="foo") + tm.assert_index_equal(result, expected) + + def test_take_when_index_has_step(self): + idx = RangeIndex(1, 11, 3, name="foo") # [1, 4, 7, 10] + result = idx.take(np.array([1, 0, -1, -4])) + expected = Index([4, 1, 10, 1], dtype=np.int64, name="foo") + tm.assert_index_equal(result, expected) + + def test_take_when_index_has_negative_step(self): + idx = RangeIndex(11, -4, -2, name="foo") # [11, 9, 7, 5, 3, 1, -1, -3] + result = idx.take(np.array([1, 0, -1, -8])) + expected = Index([9, 11, -3, 11], dtype=np.int64, name="foo") + tm.assert_index_equal(result, expected) + + +class TestWhere: + def test_where_putmask_range_cast(self): + # GH#43240 + idx = RangeIndex(0, 5, name="test") + + mask = np.array([True, True, False, False, False]) + result = idx.putmask(mask, 10) + expected = Index([10, 10, 2, 3, 4], dtype=np.int64, name="test") + tm.assert_index_equal(result, expected) + + result = idx.where(~mask, 10) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/ranges/test_join.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/ranges/test_join.py new file mode 100644 index 0000000000000000000000000000000000000000..682b5c8def9ff0e00b533610c1d45a093e7d7a8d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/ranges/test_join.py @@ -0,0 +1,177 @@ +import numpy as np + +from pandas import ( + Index, + RangeIndex, +) +import pandas._testing as tm + + +class TestJoin: + def test_join_outer(self): + # join with Index[int64] + index = RangeIndex(start=0, stop=20, step=2) + other = Index(np.arange(25, 14, -1, dtype=np.int64)) + + res, lidx, ridx = index.join(other, how="outer", return_indexers=True) + noidx_res = index.join(other, how="outer") + tm.assert_index_equal(res, noidx_res) + + eres = Index( + [0, 2, 4, 6, 8, 10, 12, 14, 15, 16, 17, 18, 19, 20, 21, 22, 23, 24, 25] + ) + elidx = np.array( + [0, 1, 2, 3, 4, 5, 6, 7, -1, 8, -1, 9, -1, -1, -1, -1, -1, -1, -1], + dtype=np.intp, + ) + eridx = np.array( + [-1, -1, -1, -1, -1, -1, -1, -1, 10, 9, 8, 7, 6, 5, 4, 3, 2, 1, 0], + dtype=np.intp, + ) + + assert isinstance(res, Index) and res.dtype == np.dtype(np.int64) + assert not isinstance(res, RangeIndex) + tm.assert_index_equal(res, eres, exact=True) + tm.assert_numpy_array_equal(lidx, elidx) + tm.assert_numpy_array_equal(ridx, eridx) + + # join with RangeIndex + other = RangeIndex(25, 14, -1) + + res, lidx, ridx = index.join(other, how="outer", return_indexers=True) + noidx_res = index.join(other, how="outer") + tm.assert_index_equal(res, noidx_res) + + assert isinstance(res, Index) and res.dtype == np.int64 + assert not isinstance(res, RangeIndex) + tm.assert_index_equal(res, eres) + tm.assert_numpy_array_equal(lidx, elidx) + tm.assert_numpy_array_equal(ridx, eridx) + + def test_join_inner(self): + # Join with non-RangeIndex + index = RangeIndex(start=0, stop=20, step=2) + other = Index(np.arange(25, 14, -1, dtype=np.int64)) + + res, lidx, ridx = index.join(other, how="inner", return_indexers=True) + + # no guarantee of sortedness, so sort for comparison purposes + ind = res.argsort() + res = res.take(ind) + lidx = lidx.take(ind) + ridx = ridx.take(ind) + + eres = Index([16, 18]) + elidx = np.array([8, 9], dtype=np.intp) + eridx = np.array([9, 7], dtype=np.intp) + + assert isinstance(res, Index) and res.dtype == np.int64 + tm.assert_index_equal(res, eres) + tm.assert_numpy_array_equal(lidx, elidx) + tm.assert_numpy_array_equal(ridx, eridx) + + # Join two RangeIndex + other = RangeIndex(25, 14, -1) + + res, lidx, ridx = index.join(other, how="inner", return_indexers=True) + + assert isinstance(res, RangeIndex) + tm.assert_index_equal(res, eres, exact="equiv") + tm.assert_numpy_array_equal(lidx, elidx) + tm.assert_numpy_array_equal(ridx, eridx) + + def test_join_left(self): + # Join with Index[int64] + index = RangeIndex(start=0, stop=20, step=2) + other = Index(np.arange(25, 14, -1, dtype=np.int64)) + + res, lidx, ridx = index.join(other, how="left", return_indexers=True) + eres = index + eridx = np.array([-1, -1, -1, -1, -1, -1, -1, -1, 9, 7], dtype=np.intp) + + assert isinstance(res, RangeIndex) + tm.assert_index_equal(res, eres) + assert lidx is None + tm.assert_numpy_array_equal(ridx, eridx) + + # Join withRangeIndex + other = Index(np.arange(25, 14, -1, dtype=np.int64)) + + res, lidx, ridx = index.join(other, how="left", return_indexers=True) + + assert isinstance(res, RangeIndex) + tm.assert_index_equal(res, eres) + assert lidx is None + tm.assert_numpy_array_equal(ridx, eridx) + + def test_join_right(self): + # Join with Index[int64] + index = RangeIndex(start=0, stop=20, step=2) + other = Index(np.arange(25, 14, -1, dtype=np.int64)) + + res, lidx, ridx = index.join(other, how="right", return_indexers=True) + eres = other + elidx = np.array([-1, -1, -1, -1, -1, -1, -1, 9, -1, 8, -1], dtype=np.intp) + + assert isinstance(other, Index) and other.dtype == np.int64 + tm.assert_index_equal(res, eres) + tm.assert_numpy_array_equal(lidx, elidx) + assert ridx is None + + # Join withRangeIndex + other = RangeIndex(25, 14, -1) + + res, lidx, ridx = index.join(other, how="right", return_indexers=True) + eres = other + + assert isinstance(other, RangeIndex) + tm.assert_index_equal(res, eres) + tm.assert_numpy_array_equal(lidx, elidx) + assert ridx is None + + def test_join_non_int_index(self): + index = RangeIndex(start=0, stop=20, step=2) + other = Index([3, 6, 7, 8, 10], dtype=object) + + outer = index.join(other, how="outer") + outer2 = other.join(index, how="outer") + expected = Index([0, 2, 3, 4, 6, 7, 8, 10, 12, 14, 16, 18]) + tm.assert_index_equal(outer, outer2) + tm.assert_index_equal(outer, expected) + + inner = index.join(other, how="inner") + inner2 = other.join(index, how="inner") + expected = Index([6, 8, 10]) + tm.assert_index_equal(inner, inner2) + tm.assert_index_equal(inner, expected) + + left = index.join(other, how="left") + tm.assert_index_equal(left, index.astype(object)) + + left2 = other.join(index, how="left") + tm.assert_index_equal(left2, other) + + right = index.join(other, how="right") + tm.assert_index_equal(right, other) + + right2 = other.join(index, how="right") + tm.assert_index_equal(right2, index.astype(object)) + + def test_join_non_unique(self): + index = RangeIndex(start=0, stop=20, step=2) + other = Index([4, 4, 3, 3]) + + res, lidx, ridx = index.join(other, return_indexers=True) + + eres = Index([0, 2, 4, 4, 6, 8, 10, 12, 14, 16, 18]) + elidx = np.array([0, 1, 2, 2, 3, 4, 5, 6, 7, 8, 9], dtype=np.intp) + eridx = np.array([-1, -1, 0, 1, -1, -1, -1, -1, -1, -1, -1], dtype=np.intp) + + tm.assert_index_equal(res, eres) + tm.assert_numpy_array_equal(lidx, elidx) + tm.assert_numpy_array_equal(ridx, eridx) + + def test_join_self(self, join_type): + index = RangeIndex(start=0, stop=20, step=2) + joined = index.join(index, how=join_type) + assert index is joined diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/ranges/test_range.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/ranges/test_range.py new file mode 100644 index 0000000000000000000000000000000000000000..06e19eeca67663318709772ff23f76675545e19b --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/ranges/test_range.py @@ -0,0 +1,622 @@ +import numpy as np +import pytest + +from pandas.core.dtypes.common import ensure_platform_int + +import pandas as pd +from pandas import ( + Index, + RangeIndex, +) +import pandas._testing as tm + + +class TestRangeIndex: + @pytest.fixture + def simple_index(self): + return RangeIndex(start=0, stop=20, step=2) + + def test_constructor_unwraps_index(self): + result = RangeIndex(1, 3) + expected = np.array([1, 2], dtype=np.int64) + tm.assert_numpy_array_equal(result._data, expected) + + def test_can_hold_identifiers(self, simple_index): + idx = simple_index + key = idx[0] + assert idx._can_hold_identifiers_and_holds_name(key) is False + + def test_too_many_names(self, simple_index): + index = simple_index + with pytest.raises(ValueError, match="^Length"): + index.names = ["roger", "harold"] + + @pytest.mark.parametrize( + "index, start, stop, step", + [ + (RangeIndex(5), 0, 5, 1), + (RangeIndex(0, 5), 0, 5, 1), + (RangeIndex(5, step=2), 0, 5, 2), + (RangeIndex(1, 5, 2), 1, 5, 2), + ], + ) + def test_start_stop_step_attrs(self, index, start, stop, step): + # GH 25710 + assert index.start == start + assert index.stop == stop + assert index.step == step + + def test_copy(self): + i = RangeIndex(5, name="Foo") + i_copy = i.copy() + assert i_copy is not i + assert i_copy.identical(i) + assert i_copy._range == range(0, 5, 1) + assert i_copy.name == "Foo" + + def test_repr(self): + i = RangeIndex(5, name="Foo") + result = repr(i) + expected = "RangeIndex(start=0, stop=5, step=1, name='Foo')" + assert result == expected + + result = eval(result) + tm.assert_index_equal(result, i, exact=True) + + i = RangeIndex(5, 0, -1) + result = repr(i) + expected = "RangeIndex(start=5, stop=0, step=-1)" + assert result == expected + + result = eval(result) + tm.assert_index_equal(result, i, exact=True) + + def test_insert(self): + idx = RangeIndex(5, name="Foo") + result = idx[1:4] + + # test 0th element + tm.assert_index_equal(idx[0:4], result.insert(0, idx[0]), exact="equiv") + + # GH 18295 (test missing) + expected = Index([0, np.nan, 1, 2, 3, 4], dtype=np.float64) + for na in [np.nan, None, pd.NA]: + result = RangeIndex(5).insert(1, na) + tm.assert_index_equal(result, expected) + + result = RangeIndex(5).insert(1, pd.NaT) + expected = Index([0, pd.NaT, 1, 2, 3, 4], dtype=object) + tm.assert_index_equal(result, expected) + + def test_insert_edges_preserves_rangeindex(self): + idx = Index(range(4, 9, 2)) + + result = idx.insert(0, 2) + expected = Index(range(2, 9, 2)) + tm.assert_index_equal(result, expected, exact=True) + + result = idx.insert(3, 10) + expected = Index(range(4, 11, 2)) + tm.assert_index_equal(result, expected, exact=True) + + def test_insert_middle_preserves_rangeindex(self): + # insert in the middle + idx = Index(range(0, 3, 2)) + result = idx.insert(1, 1) + expected = Index(range(3)) + tm.assert_index_equal(result, expected, exact=True) + + idx = idx * 2 + result = idx.insert(1, 2) + expected = expected * 2 + tm.assert_index_equal(result, expected, exact=True) + + def test_delete(self): + idx = RangeIndex(5, name="Foo") + expected = idx[1:] + result = idx.delete(0) + tm.assert_index_equal(result, expected, exact=True) + assert result.name == expected.name + + expected = idx[:-1] + result = idx.delete(-1) + tm.assert_index_equal(result, expected, exact=True) + assert result.name == expected.name + + msg = "index 5 is out of bounds for axis 0 with size 5" + with pytest.raises((IndexError, ValueError), match=msg): + # either depending on numpy version + result = idx.delete(len(idx)) + + def test_delete_preserves_rangeindex(self): + idx = Index(range(2), name="foo") + + result = idx.delete([1]) + expected = Index(range(1), name="foo") + tm.assert_index_equal(result, expected, exact=True) + + result = idx.delete(1) + tm.assert_index_equal(result, expected, exact=True) + + def test_delete_preserves_rangeindex_middle(self): + idx = Index(range(3), name="foo") + result = idx.delete(1) + expected = idx[::2] + tm.assert_index_equal(result, expected, exact=True) + + result = idx.delete(-2) + tm.assert_index_equal(result, expected, exact=True) + + def test_delete_preserves_rangeindex_list_at_end(self): + idx = RangeIndex(0, 6, 1) + + loc = [2, 3, 4, 5] + result = idx.delete(loc) + expected = idx[:2] + tm.assert_index_equal(result, expected, exact=True) + + result = idx.delete(loc[::-1]) + tm.assert_index_equal(result, expected, exact=True) + + def test_delete_preserves_rangeindex_list_middle(self): + idx = RangeIndex(0, 6, 1) + + loc = [1, 2, 3, 4] + result = idx.delete(loc) + expected = RangeIndex(0, 6, 5) + tm.assert_index_equal(result, expected, exact=True) + + result = idx.delete(loc[::-1]) + tm.assert_index_equal(result, expected, exact=True) + + def test_delete_all_preserves_rangeindex(self): + idx = RangeIndex(0, 6, 1) + + loc = [0, 1, 2, 3, 4, 5] + result = idx.delete(loc) + expected = idx[:0] + tm.assert_index_equal(result, expected, exact=True) + + result = idx.delete(loc[::-1]) + tm.assert_index_equal(result, expected, exact=True) + + def test_delete_not_preserving_rangeindex(self): + idx = RangeIndex(0, 6, 1) + + loc = [0, 3, 5] + result = idx.delete(loc) + expected = Index([1, 2, 4]) + tm.assert_index_equal(result, expected, exact=True) + + result = idx.delete(loc[::-1]) + tm.assert_index_equal(result, expected, exact=True) + + def test_view(self): + i = RangeIndex(0, name="Foo") + i_view = i.view() + assert i_view.name == "Foo" + + i_view = i.view("i8") + tm.assert_numpy_array_equal(i.values, i_view) + + msg = "Passing a type in RangeIndex.view is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + i_view = i.view(RangeIndex) + tm.assert_index_equal(i, i_view) + + def test_dtype(self, simple_index): + index = simple_index + assert index.dtype == np.int64 + + def test_cache(self): + # GH 26565, GH26617, GH35432, GH53387 + # This test checks whether _cache has been set. + # Calling RangeIndex._cache["_data"] creates an int64 array of the same length + # as the RangeIndex and stores it in _cache. + idx = RangeIndex(0, 100, 10) + + assert idx._cache == {} + + repr(idx) + assert idx._cache == {} + + str(idx) + assert idx._cache == {} + + idx.get_loc(20) + assert idx._cache == {} + + 90 in idx # True + assert idx._cache == {} + + 91 in idx # False + assert idx._cache == {} + + idx.all() + assert idx._cache == {} + + idx.any() + assert idx._cache == {} + + for _ in idx: + pass + assert idx._cache == {} + + msg = "RangeIndex.format is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + idx.format() + assert idx._cache == {} + + df = pd.DataFrame({"a": range(10)}, index=idx) + + # df.__repr__ should not populate index cache + str(df) + assert idx._cache == {} + + df.loc[50] + assert idx._cache == {} + + with pytest.raises(KeyError, match="51"): + df.loc[51] + assert idx._cache == {} + + df.loc[10:50] + assert idx._cache == {} + + df.iloc[5:10] + assert idx._cache == {} + + # after calling take, _cache may contain other keys, but not "_data" + idx.take([3, 0, 1]) + assert "_data" not in idx._cache + + df.loc[[50]] + assert "_data" not in idx._cache + + df.iloc[[5, 6, 7, 8, 9]] + assert "_data" not in idx._cache + + # idx._cache should contain a _data entry after call to idx._data + idx._data + assert isinstance(idx._data, np.ndarray) + assert idx._data is idx._data # check cached value is reused + assert "_data" in idx._cache + expected = np.arange(0, 100, 10, dtype="int64") + tm.assert_numpy_array_equal(idx._cache["_data"], expected) + + def test_is_monotonic(self): + index = RangeIndex(0, 20, 2) + assert index.is_monotonic_increasing is True + assert index.is_monotonic_increasing is True + assert index.is_monotonic_decreasing is False + assert index._is_strictly_monotonic_increasing is True + assert index._is_strictly_monotonic_decreasing is False + + index = RangeIndex(4, 0, -1) + assert index.is_monotonic_increasing is False + assert index._is_strictly_monotonic_increasing is False + assert index.is_monotonic_decreasing is True + assert index._is_strictly_monotonic_decreasing is True + + index = RangeIndex(1, 2) + assert index.is_monotonic_increasing is True + assert index.is_monotonic_increasing is True + assert index.is_monotonic_decreasing is True + assert index._is_strictly_monotonic_increasing is True + assert index._is_strictly_monotonic_decreasing is True + + index = RangeIndex(2, 1) + assert index.is_monotonic_increasing is True + assert index.is_monotonic_increasing is True + assert index.is_monotonic_decreasing is True + assert index._is_strictly_monotonic_increasing is True + assert index._is_strictly_monotonic_decreasing is True + + index = RangeIndex(1, 1) + assert index.is_monotonic_increasing is True + assert index.is_monotonic_increasing is True + assert index.is_monotonic_decreasing is True + assert index._is_strictly_monotonic_increasing is True + assert index._is_strictly_monotonic_decreasing is True + + @pytest.mark.parametrize( + "left,right", + [ + (RangeIndex(0, 9, 2), RangeIndex(0, 10, 2)), + (RangeIndex(0), RangeIndex(1, -1, 3)), + (RangeIndex(1, 2, 3), RangeIndex(1, 3, 4)), + (RangeIndex(0, -9, -2), RangeIndex(0, -10, -2)), + ], + ) + def test_equals_range(self, left, right): + assert left.equals(right) + assert right.equals(left) + + def test_logical_compat(self, simple_index): + idx = simple_index + assert idx.all() == idx.values.all() + assert idx.any() == idx.values.any() + + def test_identical(self, simple_index): + index = simple_index + i = Index(index.copy()) + assert i.identical(index) + + # we don't allow object dtype for RangeIndex + if isinstance(index, RangeIndex): + return + + same_values_different_type = Index(i, dtype=object) + assert not i.identical(same_values_different_type) + + i = index.copy(dtype=object) + i = i.rename("foo") + same_values = Index(i, dtype=object) + assert same_values.identical(index.copy(dtype=object)) + + assert not i.identical(index) + assert Index(same_values, name="foo", dtype=object).identical(i) + + assert not index.copy(dtype=object).identical(index.copy(dtype="int64")) + + def test_nbytes(self): + # memory savings vs int index + idx = RangeIndex(0, 1000) + assert idx.nbytes < Index(idx._values).nbytes / 10 + + # constant memory usage + i2 = RangeIndex(0, 10) + assert idx.nbytes == i2.nbytes + + @pytest.mark.parametrize( + "start,stop,step", + [ + # can't + ("foo", "bar", "baz"), + # shouldn't + ("0", "1", "2"), + ], + ) + def test_cant_or_shouldnt_cast(self, start, stop, step): + msg = f"Wrong type {type(start)} for value {start}" + with pytest.raises(TypeError, match=msg): + RangeIndex(start, stop, step) + + def test_view_index(self, simple_index): + index = simple_index + msg = "Passing a type in RangeIndex.view is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + index.view(Index) + + def test_prevent_casting(self, simple_index): + index = simple_index + result = index.astype("O") + assert result.dtype == np.object_ + + def test_repr_roundtrip(self, simple_index): + index = simple_index + tm.assert_index_equal(eval(repr(index)), index) + + def test_slice_keep_name(self): + idx = RangeIndex(1, 2, name="asdf") + assert idx.name == idx[1:].name + + @pytest.mark.parametrize( + "index", + [ + RangeIndex(start=0, stop=20, step=2, name="foo"), + RangeIndex(start=18, stop=-1, step=-2, name="bar"), + ], + ids=["index_inc", "index_dec"], + ) + def test_has_duplicates(self, index): + assert index.is_unique + assert not index.has_duplicates + + def test_extended_gcd(self, simple_index): + index = simple_index + result = index._extended_gcd(6, 10) + assert result[0] == result[1] * 6 + result[2] * 10 + assert 2 == result[0] + + result = index._extended_gcd(10, 6) + assert 2 == result[1] * 10 + result[2] * 6 + assert 2 == result[0] + + def test_min_fitting_element(self): + result = RangeIndex(0, 20, 2)._min_fitting_element(1) + assert 2 == result + + result = RangeIndex(1, 6)._min_fitting_element(1) + assert 1 == result + + result = RangeIndex(18, -2, -2)._min_fitting_element(1) + assert 2 == result + + result = RangeIndex(5, 0, -1)._min_fitting_element(1) + assert 1 == result + + big_num = 500000000000000000000000 + + result = RangeIndex(5, big_num * 2, 1)._min_fitting_element(big_num) + assert big_num == result + + def test_slice_specialised(self, simple_index): + index = simple_index + index.name = "foo" + + # scalar indexing + res = index[1] + expected = 2 + assert res == expected + + res = index[-1] + expected = 18 + assert res == expected + + # slicing + # slice value completion + index_slice = index[:] + expected = index + tm.assert_index_equal(index_slice, expected) + + # positive slice values + index_slice = index[7:10:2] + expected = Index([14, 18], name="foo") + tm.assert_index_equal(index_slice, expected, exact="equiv") + + # negative slice values + index_slice = index[-1:-5:-2] + expected = Index([18, 14], name="foo") + tm.assert_index_equal(index_slice, expected, exact="equiv") + + # stop overshoot + index_slice = index[2:100:4] + expected = Index([4, 12], name="foo") + tm.assert_index_equal(index_slice, expected, exact="equiv") + + # reverse + index_slice = index[::-1] + expected = Index(index.values[::-1], name="foo") + tm.assert_index_equal(index_slice, expected, exact="equiv") + + index_slice = index[-8::-1] + expected = Index([4, 2, 0], name="foo") + tm.assert_index_equal(index_slice, expected, exact="equiv") + + index_slice = index[-40::-1] + expected = Index(np.array([], dtype=np.int64), name="foo") + tm.assert_index_equal(index_slice, expected, exact="equiv") + + index_slice = index[40::-1] + expected = Index(index.values[40::-1], name="foo") + tm.assert_index_equal(index_slice, expected, exact="equiv") + + index_slice = index[10::-1] + expected = Index(index.values[::-1], name="foo") + tm.assert_index_equal(index_slice, expected, exact="equiv") + + @pytest.mark.parametrize("step", set(range(-5, 6)) - {0}) + def test_len_specialised(self, step): + # make sure that our len is the same as np.arange calc + start, stop = (0, 5) if step > 0 else (5, 0) + + arr = np.arange(start, stop, step) + index = RangeIndex(start, stop, step) + assert len(index) == len(arr) + + index = RangeIndex(stop, start, step) + assert len(index) == 0 + + @pytest.mark.parametrize( + "indices, expected", + [ + ([RangeIndex(1, 12, 5)], RangeIndex(1, 12, 5)), + ([RangeIndex(0, 6, 4)], RangeIndex(0, 6, 4)), + ([RangeIndex(1, 3), RangeIndex(3, 7)], RangeIndex(1, 7)), + ([RangeIndex(1, 5, 2), RangeIndex(5, 6)], RangeIndex(1, 6, 2)), + ([RangeIndex(1, 3, 2), RangeIndex(4, 7, 3)], RangeIndex(1, 7, 3)), + ([RangeIndex(-4, 3, 2), RangeIndex(4, 7, 2)], RangeIndex(-4, 7, 2)), + ([RangeIndex(-4, -8), RangeIndex(-8, -12)], RangeIndex(0, 0)), + ([RangeIndex(-4, -8), RangeIndex(3, -4)], RangeIndex(0, 0)), + ([RangeIndex(-4, -8), RangeIndex(3, 5)], RangeIndex(3, 5)), + ([RangeIndex(-4, -2), RangeIndex(3, 5)], Index([-4, -3, 3, 4])), + ([RangeIndex(-2), RangeIndex(3, 5)], RangeIndex(3, 5)), + ([RangeIndex(2), RangeIndex(2)], Index([0, 1, 0, 1])), + ([RangeIndex(2), RangeIndex(2, 5), RangeIndex(5, 8, 4)], RangeIndex(0, 6)), + ( + [RangeIndex(2), RangeIndex(3, 5), RangeIndex(5, 8, 4)], + Index([0, 1, 3, 4, 5]), + ), + ( + [RangeIndex(-2, 2), RangeIndex(2, 5), RangeIndex(5, 8, 4)], + RangeIndex(-2, 6), + ), + ([RangeIndex(3), Index([-1, 3, 15])], Index([0, 1, 2, -1, 3, 15])), + ([RangeIndex(3), Index([-1, 3.1, 15.0])], Index([0, 1, 2, -1, 3.1, 15.0])), + ([RangeIndex(3), Index(["a", None, 14])], Index([0, 1, 2, "a", None, 14])), + ([RangeIndex(3, 1), Index(["a", None, 14])], Index(["a", None, 14])), + ], + ) + def test_append(self, indices, expected): + # GH16212 + result = indices[0].append(indices[1:]) + tm.assert_index_equal(result, expected, exact=True) + + if len(indices) == 2: + # Append single item rather than list + result2 = indices[0].append(indices[1]) + tm.assert_index_equal(result2, expected, exact=True) + + def test_engineless_lookup(self): + # GH 16685 + # Standard lookup on RangeIndex should not require the engine to be + # created + idx = RangeIndex(2, 10, 3) + + assert idx.get_loc(5) == 1 + tm.assert_numpy_array_equal( + idx.get_indexer([2, 8]), ensure_platform_int(np.array([0, 2])) + ) + with pytest.raises(KeyError, match="3"): + idx.get_loc(3) + + assert "_engine" not in idx._cache + + # Different types of scalars can be excluded immediately, no need to + # use the _engine + with pytest.raises(KeyError, match="'a'"): + idx.get_loc("a") + + assert "_engine" not in idx._cache + + def test_format_empty(self): + # GH35712 + empty_idx = RangeIndex(0) + msg = r"RangeIndex\.format is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + assert empty_idx.format() == [] + with tm.assert_produces_warning(FutureWarning, match=msg): + assert empty_idx.format(name=True) == [""] + + @pytest.mark.parametrize( + "ri", + [ + RangeIndex(0, -1, -1), + RangeIndex(0, 1, 1), + RangeIndex(1, 3, 2), + RangeIndex(0, -1, -2), + RangeIndex(-3, -5, -2), + ], + ) + def test_append_len_one(self, ri): + # GH39401 + result = ri.append([]) + tm.assert_index_equal(result, ri, exact=True) + + @pytest.mark.parametrize("base", [RangeIndex(0, 2), Index([0, 1])]) + def test_isin_range(self, base): + # GH#41151 + values = RangeIndex(0, 1) + result = base.isin(values) + expected = np.array([True, False]) + tm.assert_numpy_array_equal(result, expected) + + def test_sort_values_key(self): + # GH#43666, GH#52764 + sort_order = {8: 2, 6: 0, 4: 8, 2: 10, 0: 12} + values = RangeIndex(0, 10, 2) + result = values.sort_values(key=lambda x: x.map(sort_order)) + expected = Index([6, 8, 4, 2, 0], dtype="int64") + tm.assert_index_equal(result, expected, check_exact=True) + + # check this matches the Series.sort_values behavior + ser = values.to_series() + result2 = ser.sort_values(key=lambda x: x.map(sort_order)) + tm.assert_series_equal(result2, expected.to_series(), check_exact=True) + + def test_range_index_rsub_by_const(self): + # GH#53255 + result = 3 - RangeIndex(0, 4, 1) + expected = RangeIndex(3, -1, -1) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/ranges/test_setops.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/ranges/test_setops.py new file mode 100644 index 0000000000000000000000000000000000000000..d417b8b743dc589bdf9d6acf5bde396a129ece23 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/ranges/test_setops.py @@ -0,0 +1,493 @@ +from datetime import ( + datetime, + timedelta, +) + +from hypothesis import ( + assume, + given, + strategies as st, +) +import numpy as np +import pytest + +from pandas import ( + Index, + RangeIndex, +) +import pandas._testing as tm + + +class TestRangeIndexSetOps: + @pytest.mark.parametrize("dtype", [None, "int64", "uint64"]) + def test_intersection_mismatched_dtype(self, dtype): + # check that we cast to float, not object + index = RangeIndex(start=0, stop=20, step=2, name="foo") + index = Index(index, dtype=dtype) + + flt = index.astype(np.float64) + + # bc index.equals(flt), we go through fastpath and get RangeIndex back + result = index.intersection(flt) + tm.assert_index_equal(result, index, exact=True) + + result = flt.intersection(index) + tm.assert_index_equal(result, flt, exact=True) + + # neither empty, not-equals + result = index.intersection(flt[1:]) + tm.assert_index_equal(result, flt[1:], exact=True) + + result = flt[1:].intersection(index) + tm.assert_index_equal(result, flt[1:], exact=True) + + # empty other + result = index.intersection(flt[:0]) + tm.assert_index_equal(result, flt[:0], exact=True) + + result = flt[:0].intersection(index) + tm.assert_index_equal(result, flt[:0], exact=True) + + def test_intersection_empty(self, sort, names): + # name retention on empty intersections + index = RangeIndex(start=0, stop=20, step=2, name=names[0]) + + # empty other + result = index.intersection(index[:0].rename(names[1]), sort=sort) + tm.assert_index_equal(result, index[:0].rename(names[2]), exact=True) + + # empty self + result = index[:0].intersection(index.rename(names[1]), sort=sort) + tm.assert_index_equal(result, index[:0].rename(names[2]), exact=True) + + def test_intersection(self, sort): + # intersect with Index with dtype int64 + index = RangeIndex(start=0, stop=20, step=2) + other = Index(np.arange(1, 6)) + result = index.intersection(other, sort=sort) + expected = Index(np.sort(np.intersect1d(index.values, other.values))) + tm.assert_index_equal(result, expected) + + result = other.intersection(index, sort=sort) + expected = Index( + np.sort(np.asarray(np.intersect1d(index.values, other.values))) + ) + tm.assert_index_equal(result, expected) + + # intersect with increasing RangeIndex + other = RangeIndex(1, 6) + result = index.intersection(other, sort=sort) + expected = Index(np.sort(np.intersect1d(index.values, other.values))) + tm.assert_index_equal(result, expected, exact="equiv") + + # intersect with decreasing RangeIndex + other = RangeIndex(5, 0, -1) + result = index.intersection(other, sort=sort) + expected = Index(np.sort(np.intersect1d(index.values, other.values))) + tm.assert_index_equal(result, expected, exact="equiv") + + # reversed (GH 17296) + result = other.intersection(index, sort=sort) + tm.assert_index_equal(result, expected, exact="equiv") + + # GH 17296: intersect two decreasing RangeIndexes + first = RangeIndex(10, -2, -2) + other = RangeIndex(5, -4, -1) + expected = first.astype(int).intersection(other.astype(int), sort=sort) + result = first.intersection(other, sort=sort).astype(int) + tm.assert_index_equal(result, expected) + + # reversed + result = other.intersection(first, sort=sort).astype(int) + tm.assert_index_equal(result, expected) + + index = RangeIndex(5, name="foo") + + # intersect of non-overlapping indices + other = RangeIndex(5, 10, 1, name="foo") + result = index.intersection(other, sort=sort) + expected = RangeIndex(0, 0, 1, name="foo") + tm.assert_index_equal(result, expected) + + other = RangeIndex(-1, -5, -1) + result = index.intersection(other, sort=sort) + expected = RangeIndex(0, 0, 1) + tm.assert_index_equal(result, expected) + + # intersection of empty indices + other = RangeIndex(0, 0, 1) + result = index.intersection(other, sort=sort) + expected = RangeIndex(0, 0, 1) + tm.assert_index_equal(result, expected) + + result = other.intersection(index, sort=sort) + tm.assert_index_equal(result, expected) + + def test_intersection_non_overlapping_gcd(self, sort, names): + # intersection of non-overlapping values based on start value and gcd + index = RangeIndex(1, 10, 2, name=names[0]) + other = RangeIndex(0, 10, 4, name=names[1]) + result = index.intersection(other, sort=sort) + expected = RangeIndex(0, 0, 1, name=names[2]) + tm.assert_index_equal(result, expected) + + def test_union_noncomparable(self, sort): + # corner case, Index with non-int64 dtype + index = RangeIndex(start=0, stop=20, step=2) + other = Index([datetime.now() + timedelta(i) for i in range(4)], dtype=object) + result = index.union(other, sort=sort) + expected = Index(np.concatenate((index, other))) + tm.assert_index_equal(result, expected) + + result = other.union(index, sort=sort) + expected = Index(np.concatenate((other, index))) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "idx1, idx2, expected_sorted, expected_notsorted", + [ + ( + RangeIndex(0, 10, 1), + RangeIndex(0, 10, 1), + RangeIndex(0, 10, 1), + RangeIndex(0, 10, 1), + ), + ( + RangeIndex(0, 10, 1), + RangeIndex(5, 20, 1), + RangeIndex(0, 20, 1), + RangeIndex(0, 20, 1), + ), + ( + RangeIndex(0, 10, 1), + RangeIndex(10, 20, 1), + RangeIndex(0, 20, 1), + RangeIndex(0, 20, 1), + ), + ( + RangeIndex(0, -10, -1), + RangeIndex(0, -10, -1), + RangeIndex(0, -10, -1), + RangeIndex(0, -10, -1), + ), + ( + RangeIndex(0, -10, -1), + RangeIndex(-10, -20, -1), + RangeIndex(-19, 1, 1), + RangeIndex(0, -20, -1), + ), + ( + RangeIndex(0, 10, 2), + RangeIndex(1, 10, 2), + RangeIndex(0, 10, 1), + Index(list(range(0, 10, 2)) + list(range(1, 10, 2))), + ), + ( + RangeIndex(0, 11, 2), + RangeIndex(1, 12, 2), + RangeIndex(0, 12, 1), + Index(list(range(0, 11, 2)) + list(range(1, 12, 2))), + ), + ( + RangeIndex(0, 21, 4), + RangeIndex(-2, 24, 4), + RangeIndex(-2, 24, 2), + Index(list(range(0, 21, 4)) + list(range(-2, 24, 4))), + ), + ( + RangeIndex(0, -20, -2), + RangeIndex(-1, -21, -2), + RangeIndex(-19, 1, 1), + Index(list(range(0, -20, -2)) + list(range(-1, -21, -2))), + ), + ( + RangeIndex(0, 100, 5), + RangeIndex(0, 100, 20), + RangeIndex(0, 100, 5), + RangeIndex(0, 100, 5), + ), + ( + RangeIndex(0, -100, -5), + RangeIndex(5, -100, -20), + RangeIndex(-95, 10, 5), + Index(list(range(0, -100, -5)) + [5]), + ), + ( + RangeIndex(0, -11, -1), + RangeIndex(1, -12, -4), + RangeIndex(-11, 2, 1), + Index(list(range(0, -11, -1)) + [1, -11]), + ), + (RangeIndex(0), RangeIndex(0), RangeIndex(0), RangeIndex(0)), + ( + RangeIndex(0, -10, -2), + RangeIndex(0), + RangeIndex(0, -10, -2), + RangeIndex(0, -10, -2), + ), + ( + RangeIndex(0, 100, 2), + RangeIndex(100, 150, 200), + RangeIndex(0, 102, 2), + RangeIndex(0, 102, 2), + ), + ( + RangeIndex(0, -100, -2), + RangeIndex(-100, 50, 102), + RangeIndex(-100, 4, 2), + Index(list(range(0, -100, -2)) + [-100, 2]), + ), + ( + RangeIndex(0, -100, -1), + RangeIndex(0, -50, -3), + RangeIndex(-99, 1, 1), + RangeIndex(0, -100, -1), + ), + ( + RangeIndex(0, 1, 1), + RangeIndex(5, 6, 10), + RangeIndex(0, 6, 5), + RangeIndex(0, 10, 5), + ), + ( + RangeIndex(0, 10, 5), + RangeIndex(-5, -6, -20), + RangeIndex(-5, 10, 5), + Index([0, 5, -5]), + ), + ( + RangeIndex(0, 3, 1), + RangeIndex(4, 5, 1), + Index([0, 1, 2, 4]), + Index([0, 1, 2, 4]), + ), + ( + RangeIndex(0, 10, 1), + Index([], dtype=np.int64), + RangeIndex(0, 10, 1), + RangeIndex(0, 10, 1), + ), + ( + RangeIndex(0), + Index([1, 5, 6]), + Index([1, 5, 6]), + Index([1, 5, 6]), + ), + # GH 43885 + ( + RangeIndex(0, 10), + RangeIndex(0, 5), + RangeIndex(0, 10), + RangeIndex(0, 10), + ), + ], + ids=lambda x: repr(x) if isinstance(x, RangeIndex) else x, + ) + def test_union_sorted(self, idx1, idx2, expected_sorted, expected_notsorted): + res1 = idx1.union(idx2, sort=None) + tm.assert_index_equal(res1, expected_sorted, exact=True) + + res1 = idx1.union(idx2, sort=False) + tm.assert_index_equal(res1, expected_notsorted, exact=True) + + res2 = idx2.union(idx1, sort=None) + res3 = Index(idx1._values, name=idx1.name).union(idx2, sort=None) + tm.assert_index_equal(res2, expected_sorted, exact=True) + tm.assert_index_equal(res3, expected_sorted, exact="equiv") + + def test_union_same_step_misaligned(self): + # GH#44019 + left = RangeIndex(range(0, 20, 4)) + right = RangeIndex(range(1, 21, 4)) + + result = left.union(right) + expected = Index([0, 1, 4, 5, 8, 9, 12, 13, 16, 17]) + tm.assert_index_equal(result, expected, exact=True) + + def test_difference(self): + # GH#12034 Cases where we operate against another RangeIndex and may + # get back another RangeIndex + obj = RangeIndex.from_range(range(1, 10), name="foo") + + result = obj.difference(obj) + expected = RangeIndex.from_range(range(0), name="foo") + tm.assert_index_equal(result, expected, exact=True) + + result = obj.difference(expected.rename("bar")) + tm.assert_index_equal(result, obj.rename(None), exact=True) + + result = obj.difference(obj[:3]) + tm.assert_index_equal(result, obj[3:], exact=True) + + result = obj.difference(obj[-3:]) + tm.assert_index_equal(result, obj[:-3], exact=True) + + # Flipping the step of 'other' doesn't affect the result, but + # flipping the stepof 'self' does when sort=None + result = obj[::-1].difference(obj[-3:]) + tm.assert_index_equal(result, obj[:-3], exact=True) + + result = obj[::-1].difference(obj[-3:], sort=False) + tm.assert_index_equal(result, obj[:-3][::-1], exact=True) + + result = obj[::-1].difference(obj[-3:][::-1]) + tm.assert_index_equal(result, obj[:-3], exact=True) + + result = obj[::-1].difference(obj[-3:][::-1], sort=False) + tm.assert_index_equal(result, obj[:-3][::-1], exact=True) + + result = obj.difference(obj[2:6]) + expected = Index([1, 2, 7, 8, 9], name="foo") + tm.assert_index_equal(result, expected, exact=True) + + def test_difference_sort(self): + # GH#44085 ensure we respect the sort keyword + + idx = Index(range(4))[::-1] + other = Index(range(3, 4)) + + result = idx.difference(other) + expected = Index(range(3)) + tm.assert_index_equal(result, expected, exact=True) + + result = idx.difference(other, sort=False) + expected = expected[::-1] + tm.assert_index_equal(result, expected, exact=True) + + # case where the intersection is empty + other = range(10, 12) + result = idx.difference(other, sort=None) + expected = idx[::-1] + tm.assert_index_equal(result, expected, exact=True) + + def test_difference_mismatched_step(self): + obj = RangeIndex.from_range(range(1, 10), name="foo") + + result = obj.difference(obj[::2]) + expected = obj[1::2] + tm.assert_index_equal(result, expected, exact=True) + + result = obj[::-1].difference(obj[::2], sort=False) + tm.assert_index_equal(result, expected[::-1], exact=True) + + result = obj.difference(obj[1::2]) + expected = obj[::2] + tm.assert_index_equal(result, expected, exact=True) + + result = obj[::-1].difference(obj[1::2], sort=False) + tm.assert_index_equal(result, expected[::-1], exact=True) + + def test_difference_interior_overlap_endpoints_preserved(self): + left = RangeIndex(range(4)) + right = RangeIndex(range(1, 3)) + + result = left.difference(right) + expected = RangeIndex(0, 4, 3) + assert expected.tolist() == [0, 3] + tm.assert_index_equal(result, expected, exact=True) + + def test_difference_endpoints_overlap_interior_preserved(self): + left = RangeIndex(-8, 20, 7) + right = RangeIndex(13, -9, -3) + + result = left.difference(right) + expected = RangeIndex(-1, 13, 7) + assert expected.tolist() == [-1, 6] + tm.assert_index_equal(result, expected, exact=True) + + def test_difference_interior_non_preserving(self): + # case with intersection of length 1 but RangeIndex is not preserved + idx = Index(range(10)) + + other = idx[3:4] + result = idx.difference(other) + expected = Index([0, 1, 2, 4, 5, 6, 7, 8, 9]) + tm.assert_index_equal(result, expected, exact=True) + + # case with other.step / self.step > 2 + other = idx[::3] + result = idx.difference(other) + expected = Index([1, 2, 4, 5, 7, 8]) + tm.assert_index_equal(result, expected, exact=True) + + # cases with only reaching one end of left + obj = Index(range(20)) + other = obj[:10:2] + result = obj.difference(other) + expected = Index([1, 3, 5, 7, 9] + list(range(10, 20))) + tm.assert_index_equal(result, expected, exact=True) + + other = obj[1:11:2] + result = obj.difference(other) + expected = Index([0, 2, 4, 6, 8, 10] + list(range(11, 20))) + tm.assert_index_equal(result, expected, exact=True) + + def test_symmetric_difference(self): + # GH#12034 Cases where we operate against another RangeIndex and may + # get back another RangeIndex + left = RangeIndex.from_range(range(1, 10), name="foo") + + result = left.symmetric_difference(left) + expected = RangeIndex.from_range(range(0), name="foo") + tm.assert_index_equal(result, expected) + + result = left.symmetric_difference(expected.rename("bar")) + tm.assert_index_equal(result, left.rename(None)) + + result = left[:-2].symmetric_difference(left[2:]) + expected = Index([1, 2, 8, 9], name="foo") + tm.assert_index_equal(result, expected, exact=True) + + right = RangeIndex.from_range(range(10, 15)) + + result = left.symmetric_difference(right) + expected = RangeIndex.from_range(range(1, 15)) + tm.assert_index_equal(result, expected) + + result = left.symmetric_difference(right[1:]) + expected = Index([1, 2, 3, 4, 5, 6, 7, 8, 9, 11, 12, 13, 14]) + tm.assert_index_equal(result, expected, exact=True) + + +def assert_range_or_not_is_rangelike(index): + """ + Check that we either have a RangeIndex or that this index *cannot* + be represented as a RangeIndex. + """ + if not isinstance(index, RangeIndex) and len(index) > 0: + diff = index[:-1] - index[1:] + assert not (diff == diff[0]).all() + + +@given( + st.integers(-20, 20), + st.integers(-20, 20), + st.integers(-20, 20), + st.integers(-20, 20), + st.integers(-20, 20), + st.integers(-20, 20), +) +def test_range_difference(start1, stop1, step1, start2, stop2, step2): + # test that + # a) we match Index[int64].difference and + # b) we return RangeIndex whenever it is possible to do so. + assume(step1 != 0) + assume(step2 != 0) + + left = RangeIndex(start1, stop1, step1) + right = RangeIndex(start2, stop2, step2) + + result = left.difference(right, sort=None) + assert_range_or_not_is_rangelike(result) + + left_int64 = Index(left.to_numpy()) + right_int64 = Index(right.to_numpy()) + + alt = left_int64.difference(right_int64, sort=None) + tm.assert_index_equal(result, alt, exact="equiv") + + result = left.difference(right, sort=False) + assert_range_or_not_is_rangelike(result) + + alt = left_int64.difference(right_int64, sort=False) + tm.assert_index_equal(result, alt, exact="equiv") diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/string/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/string/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/string/test_astype.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/string/test_astype.py new file mode 100644 index 0000000000000000000000000000000000000000..0349d85f2316707d6ecba2c2289fde49930cbbac --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/string/test_astype.py @@ -0,0 +1,21 @@ +from pandas import ( + Index, + Series, +) +import pandas._testing as tm + + +def test_astype_str_from_bytes(): + # https://github.com/pandas-dev/pandas/issues/38607 + # GH#49658 pre-2.0 Index called .values.astype(str) here, which effectively + # did a .decode() on the bytes object. In 2.0 we go through + # ensure_string_array which does f"{val}" + idx = Index(["あ", b"a"], dtype="object") + result = idx.astype(str) + expected = Index(["あ", "a"], dtype="str") + tm.assert_index_equal(result, expected) + + # while we're here, check that Series.astype behaves the same + result = Series(idx).astype(str) + expected = Series(expected, dtype="str") + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/string/test_indexing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/string/test_indexing.py new file mode 100644 index 0000000000000000000000000000000000000000..648ee47ddc34c1d4ae90bd986a283880743ac415 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/string/test_indexing.py @@ -0,0 +1,199 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import Index +import pandas._testing as tm + + +def _isnan(val): + try: + return val is not pd.NA and np.isnan(val) + except TypeError: + return False + + +def _equivalent_na(dtype, null): + if dtype.na_value is pd.NA and null is pd.NA: + return True + elif _isnan(dtype.na_value) and _isnan(null): + return True + else: + return False + + +class TestGetLoc: + def test_get_loc(self, any_string_dtype): + index = Index(["a", "b", "c"], dtype=any_string_dtype) + assert index.get_loc("b") == 1 + + def test_get_loc_raises(self, any_string_dtype): + index = Index(["a", "b", "c"], dtype=any_string_dtype) + with pytest.raises(KeyError, match="d"): + index.get_loc("d") + + def test_get_loc_invalid_value(self, any_string_dtype): + index = Index(["a", "b", "c"], dtype=any_string_dtype) + with pytest.raises(KeyError, match="1"): + index.get_loc(1) + + def test_get_loc_non_unique(self, any_string_dtype): + index = Index(["a", "b", "a"], dtype=any_string_dtype) + result = index.get_loc("a") + expected = np.array([True, False, True]) + tm.assert_numpy_array_equal(result, expected) + + def test_get_loc_non_missing(self, any_string_dtype, nulls_fixture): + index = Index(["a", "b", "c"], dtype=any_string_dtype) + with pytest.raises(KeyError): + index.get_loc(nulls_fixture) + + def test_get_loc_missing(self, any_string_dtype, nulls_fixture): + index = Index(["a", "b", nulls_fixture], dtype=any_string_dtype) + assert index.get_loc(nulls_fixture) == 2 + + +class TestGetIndexer: + @pytest.mark.parametrize( + "method,expected", + [ + ("pad", [-1, 0, 1, 1]), + ("backfill", [0, 0, 1, -1]), + ], + ) + def test_get_indexer_strings(self, any_string_dtype, method, expected): + expected = np.array(expected, dtype=np.intp) + index = Index(["b", "c"], dtype=any_string_dtype) + actual = index.get_indexer(["a", "b", "c", "d"], method=method) + + tm.assert_numpy_array_equal(actual, expected) + + def test_get_indexer_strings_raises(self, any_string_dtype): + index = Index(["b", "c"], dtype=any_string_dtype) + + msg = "|".join( + [ + "operation 'sub' not supported for dtype 'str", + r"unsupported operand type\(s\) for -: 'str' and 'str'", + ] + ) + with pytest.raises(TypeError, match=msg): + index.get_indexer(["a", "b", "c", "d"], method="nearest") + + with pytest.raises(TypeError, match=msg): + index.get_indexer(["a", "b", "c", "d"], method="pad", tolerance=2) + + with pytest.raises(TypeError, match=msg): + index.get_indexer( + ["a", "b", "c", "d"], method="pad", tolerance=[2, 2, 2, 2] + ) + + @pytest.mark.parametrize("null", [None, np.nan, float("nan"), pd.NA]) + def test_get_indexer_missing(self, any_string_dtype, null, using_infer_string): + # NaT and Decimal("NaN") from null_fixture are not supported for string dtype + index = Index(["a", "b", null], dtype=any_string_dtype) + result = index.get_indexer(["a", null, "c"]) + if using_infer_string: + expected = np.array([0, 2, -1], dtype=np.intp) + elif any_string_dtype == "string" and not _equivalent_na( + any_string_dtype, null + ): + expected = np.array([0, -1, -1], dtype=np.intp) + else: + expected = np.array([0, 2, -1], dtype=np.intp) + + tm.assert_numpy_array_equal(result, expected) + + +class TestGetIndexerNonUnique: + @pytest.mark.parametrize("null", [None, np.nan, float("nan"), pd.NA]) + def test_get_indexer_non_unique_nas( + self, any_string_dtype, null, using_infer_string + ): + index = Index(["a", "b", null], dtype=any_string_dtype) + indexer, missing = index.get_indexer_non_unique(["a", null]) + + if using_infer_string: + expected_indexer = np.array([0, 2], dtype=np.intp) + expected_missing = np.array([], dtype=np.intp) + elif any_string_dtype == "string" and not _equivalent_na( + any_string_dtype, null + ): + expected_indexer = np.array([0, -1], dtype=np.intp) + expected_missing = np.array([1], dtype=np.intp) + else: + expected_indexer = np.array([0, 2], dtype=np.intp) + expected_missing = np.array([], dtype=np.intp) + tm.assert_numpy_array_equal(indexer, expected_indexer) + tm.assert_numpy_array_equal(missing, expected_missing) + + # actually non-unique + index = Index(["a", null, "b", null], dtype=any_string_dtype) + indexer, missing = index.get_indexer_non_unique(["a", null]) + + if using_infer_string: + expected_indexer = np.array([0, 1, 3], dtype=np.intp) + elif any_string_dtype == "string" and not _equivalent_na( + any_string_dtype, null + ): + pass + else: + expected_indexer = np.array([0, 1, 3], dtype=np.intp) + tm.assert_numpy_array_equal(indexer, expected_indexer) + tm.assert_numpy_array_equal(missing, expected_missing) + + +class TestSliceLocs: + @pytest.mark.parametrize( + "in_slice,expected", + [ + # error: Slice index must be an integer or None + (pd.IndexSlice[::-1], "yxdcb"), + (pd.IndexSlice["b":"y":-1], ""), # type: ignore[misc] + (pd.IndexSlice["b"::-1], "b"), # type: ignore[misc] + (pd.IndexSlice[:"b":-1], "yxdcb"), # type: ignore[misc] + (pd.IndexSlice[:"y":-1], "y"), # type: ignore[misc] + (pd.IndexSlice["y"::-1], "yxdcb"), # type: ignore[misc] + (pd.IndexSlice["y"::-4], "yb"), # type: ignore[misc] + # absent labels + (pd.IndexSlice[:"a":-1], "yxdcb"), # type: ignore[misc] + (pd.IndexSlice[:"a":-2], "ydb"), # type: ignore[misc] + (pd.IndexSlice["z"::-1], "yxdcb"), # type: ignore[misc] + (pd.IndexSlice["z"::-3], "yc"), # type: ignore[misc] + (pd.IndexSlice["m"::-1], "dcb"), # type: ignore[misc] + (pd.IndexSlice[:"m":-1], "yx"), # type: ignore[misc] + (pd.IndexSlice["a":"a":-1], ""), # type: ignore[misc] + (pd.IndexSlice["z":"z":-1], ""), # type: ignore[misc] + (pd.IndexSlice["m":"m":-1], ""), # type: ignore[misc] + ], + ) + def test_slice_locs_negative_step(self, in_slice, expected, any_string_dtype): + index = Index(list("bcdxy"), dtype=any_string_dtype) + + s_start, s_stop = index.slice_locs(in_slice.start, in_slice.stop, in_slice.step) + result = index[s_start : s_stop : in_slice.step] + expected = Index(list(expected), dtype=any_string_dtype) + tm.assert_index_equal(result, expected) + + def test_slice_locs_negative_step_oob(self, any_string_dtype): + index = Index(list("bcdxy"), dtype=any_string_dtype) + + result = index[-10:5:1] + tm.assert_index_equal(result, index) + + result = index[4:-10:-1] + expected = Index(list("yxdcb"), dtype=any_string_dtype) + tm.assert_index_equal(result, expected) + + def test_slice_locs_dup(self, any_string_dtype): + index = Index(["a", "a", "b", "c", "d", "d"], dtype=any_string_dtype) + assert index.slice_locs("a", "d") == (0, 6) + assert index.slice_locs(end="d") == (0, 6) + assert index.slice_locs("a", "c") == (0, 4) + assert index.slice_locs("b", "d") == (2, 6) + + index2 = index[::-1] + assert index2.slice_locs("d", "a") == (0, 6) + assert index2.slice_locs(end="a") == (0, 6) + assert index2.slice_locs("d", "b") == (0, 4) + assert index2.slice_locs("c", "a") == (2, 6) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_any_index.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_any_index.py new file mode 100644 index 0000000000000000000000000000000000000000..8edeaf9c16083e22830178af92d30706afe4b26a --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_any_index.py @@ -0,0 +1,172 @@ +""" +Tests that can be parametrized over _any_ Index object. +""" +import re + +import numpy as np +import pytest + +from pandas.errors import InvalidIndexError + +import pandas._testing as tm + + +def test_boolean_context_compat(index): + # GH#7897 + with pytest.raises(ValueError, match="The truth value of a"): + if index: + pass + + with pytest.raises(ValueError, match="The truth value of a"): + bool(index) + + +def test_sort(index): + msg = "cannot sort an Index object in-place, use sort_values instead" + with pytest.raises(TypeError, match=msg): + index.sort() + + +def test_hash_error(index): + with pytest.raises(TypeError, match=f"unhashable type: '{type(index).__name__}'"): + hash(index) + + +def test_mutability(index): + if not len(index): + pytest.skip("Test doesn't make sense for empty index") + msg = "Index does not support mutable operations" + with pytest.raises(TypeError, match=msg): + index[0] = index[0] + + +@pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") +def test_map_identity_mapping(index, request): + # GH#12766 + + result = index.map(lambda x: x) + if index.dtype == object and result.dtype in [bool, "string"]: + assert (index == result).all() + # TODO: could work that into the 'exact="equiv"'? + return # FIXME: doesn't belong in this file anymore! + tm.assert_index_equal(result, index, exact="equiv") + + +def test_wrong_number_names(index): + names = index.nlevels * ["apple", "banana", "carrot"] + with pytest.raises(ValueError, match="^Length"): + index.names = names + + +def test_view_preserves_name(index): + assert index.view().name == index.name + + +def test_ravel(index): + # GH#19956 ravel returning ndarray is deprecated, in 2.0 returns a view on self + res = index.ravel() + tm.assert_index_equal(res, index) + + +class TestConversion: + def test_to_series(self, index): + # assert that we are creating a copy of the index + + ser = index.to_series() + assert ser.values is not index.values + assert ser.index is not index + assert ser.name == index.name + + def test_to_series_with_arguments(self, index): + # GH#18699 + + # index kwarg + ser = index.to_series(index=index) + + assert ser.values is not index.values + assert ser.index is index + assert ser.name == index.name + + # name kwarg + ser = index.to_series(name="__test") + + assert ser.values is not index.values + assert ser.index is not index + assert ser.name != index.name + + def test_tolist_matches_list(self, index): + assert index.tolist() == list(index) + + +class TestRoundTrips: + def test_pickle_roundtrip(self, index): + result = tm.round_trip_pickle(index) + tm.assert_index_equal(result, index, exact=True) + if result.nlevels > 1: + # GH#8367 round-trip with timezone + assert index.equal_levels(result) + + def test_pickle_preserves_name(self, index): + original_name, index.name = index.name, "foo" + unpickled = tm.round_trip_pickle(index) + assert index.equals(unpickled) + index.name = original_name + + +class TestIndexing: + def test_get_loc_listlike_raises_invalid_index_error(self, index): + # and never TypeError + key = np.array([0, 1], dtype=np.intp) + + with pytest.raises(InvalidIndexError, match=r"\[0 1\]"): + index.get_loc(key) + + with pytest.raises(InvalidIndexError, match=r"\[False True\]"): + index.get_loc(key.astype(bool)) + + def test_getitem_ellipsis(self, index): + # GH#21282 + result = index[...] + assert result.equals(index) + assert result is not index + + def test_slice_keeps_name(self, index): + assert index.name == index[1:].name + + @pytest.mark.parametrize("item", [101, "no_int", 2.5]) + def test_getitem_error(self, index, item): + msg = "|".join( + [ + r"index 101 is out of bounds for axis 0 with size [\d]+", + re.escape( + "only integers, slices (`:`), ellipsis (`...`), " + "numpy.newaxis (`None`) and integer or boolean arrays " + "are valid indices" + ), + "index out of bounds", # string[pyarrow] + ] + ) + with pytest.raises(IndexError, match=msg): + index[item] + + +class TestRendering: + def test_str(self, index): + # test the string repr + index.name = "foo" + assert "'foo'" in str(index) + assert type(index).__name__ in str(index) + + +class TestReductions: + def test_argmax_axis_invalid(self, index): + # GH#23081 + msg = r"`axis` must be fewer than the number of dimensions \(1\)" + with pytest.raises(ValueError, match=msg): + index.argmax(axis=1) + with pytest.raises(ValueError, match=msg): + index.argmin(axis=2) + with pytest.raises(ValueError, match=msg): + index.min(axis=-2) + with pytest.raises(ValueError, match=msg): + index.max(axis=-3) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_base.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_base.py new file mode 100644 index 0000000000000000000000000000000000000000..a94e4728a975174ac0663898fd812c6de7775936 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_base.py @@ -0,0 +1,1734 @@ +from collections import defaultdict +from datetime import datetime +from functools import partial +import math +import operator +import re + +import numpy as np +import pytest + +from pandas.compat import IS64 +from pandas.errors import InvalidIndexError +import pandas.util._test_decorators as td + +from pandas.core.dtypes.common import ( + is_any_real_numeric_dtype, + is_numeric_dtype, + is_object_dtype, +) + +import pandas as pd +from pandas import ( + CategoricalIndex, + DataFrame, + DatetimeIndex, + IntervalIndex, + PeriodIndex, + RangeIndex, + Series, + TimedeltaIndex, + date_range, + period_range, + timedelta_range, +) +import pandas._testing as tm +from pandas.core.indexes.api import ( + Index, + MultiIndex, + _get_combined_index, + ensure_index, + ensure_index_from_sequences, +) + + +class TestIndex: + @pytest.fixture + def simple_index(self) -> Index: + return Index(list("abcde")) + + def test_can_hold_identifiers(self, simple_index): + index = simple_index + key = index[0] + assert index._can_hold_identifiers_and_holds_name(key) is True + + @pytest.mark.parametrize("index", ["datetime"], indirect=True) + def test_new_axis(self, index): + # TODO: a bunch of scattered tests check this deprecation is enforced. + # de-duplicate/centralize them. + with pytest.raises(ValueError, match="Multi-dimensional indexing"): + # GH#30588 multi-dimensional indexing deprecated + index[None, :] + + def test_constructor_regular(self, index): + tm.assert_contains_all(index, index) + + @pytest.mark.parametrize("index", ["string"], indirect=True) + def test_constructor_casting(self, index): + # casting + arr = np.array(index) + new_index = Index(arr) + tm.assert_contains_all(arr, new_index) + tm.assert_index_equal(index, new_index) + + def test_constructor_copy(self, using_infer_string): + index = Index(list("abc"), name="name") + arr = np.array(index) + new_index = Index(arr, copy=True, name="name") + assert isinstance(new_index, Index) + assert new_index.name == "name" + if using_infer_string: + tm.assert_extension_array_equal( + new_index.values, pd.array(arr, dtype="str") + ) + else: + tm.assert_numpy_array_equal(arr, new_index.values) + arr[0] = "SOMEBIGLONGSTRING" + assert new_index[0] != "SOMEBIGLONGSTRING" + + @pytest.mark.parametrize("cast_as_obj", [True, False]) + @pytest.mark.parametrize( + "index", + [ + date_range( + "2015-01-01 10:00", + freq="D", + periods=3, + tz="US/Eastern", + name="Green Eggs & Ham", + ), # DTI with tz + date_range("2015-01-01 10:00", freq="D", periods=3), # DTI no tz + timedelta_range("1 days", freq="D", periods=3), # td + period_range("2015-01-01", freq="D", periods=3), # period + ], + ) + def test_constructor_from_index_dtlike(self, cast_as_obj, index): + if cast_as_obj: + with tm.assert_produces_warning(FutureWarning, match="Dtype inference"): + result = Index(index.astype(object)) + else: + result = Index(index) + + tm.assert_index_equal(result, index) + + if isinstance(index, DatetimeIndex): + assert result.tz == index.tz + if cast_as_obj: + # GH#23524 check that Index(dti, dtype=object) does not + # incorrectly raise ValueError, and that nanoseconds are not + # dropped + index += pd.Timedelta(nanoseconds=50) + result = Index(index, dtype=object) + assert result.dtype == np.object_ + assert list(result) == list(index) + + @pytest.mark.parametrize( + "index,has_tz", + [ + ( + date_range("2015-01-01 10:00", freq="D", periods=3, tz="US/Eastern"), + True, + ), # datetimetz + (timedelta_range("1 days", freq="D", periods=3), False), # td + (period_range("2015-01-01", freq="D", periods=3), False), # period + ], + ) + def test_constructor_from_series_dtlike(self, index, has_tz): + result = Index(Series(index)) + tm.assert_index_equal(result, index) + + if has_tz: + assert result.tz == index.tz + + def test_constructor_from_series_freq(self): + # GH 6273 + # create from a series, passing a freq + dts = ["1-1-1990", "2-1-1990", "3-1-1990", "4-1-1990", "5-1-1990"] + expected = DatetimeIndex(dts, freq="MS") + + s = Series(pd.to_datetime(dts)) + result = DatetimeIndex(s, freq="MS") + + tm.assert_index_equal(result, expected) + + def test_constructor_from_frame_series_freq(self, using_infer_string): + # GH 6273 + # create from a series, passing a freq + dts = ["1-1-1990", "2-1-1990", "3-1-1990", "4-1-1990", "5-1-1990"] + expected = DatetimeIndex(dts, freq="MS") + + df = DataFrame(np.random.default_rng(2).random((5, 3))) + df["date"] = dts + result = DatetimeIndex(df["date"], freq="MS") + dtype = object if not using_infer_string else "str" + assert df["date"].dtype == dtype + expected.name = "date" + tm.assert_index_equal(result, expected) + + expected = Series(dts, name="date") + tm.assert_series_equal(df["date"], expected) + + # GH 6274 + # infer freq of same + if not using_infer_string: + # Doesn't work with arrow strings + freq = pd.infer_freq(df["date"]) + assert freq == "MS" + + def test_constructor_int_dtype_nan(self): + # see gh-15187 + data = [np.nan] + expected = Index(data, dtype=np.float64) + result = Index(data, dtype="float") + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "klass,dtype,na_val", + [ + (Index, np.float64, np.nan), + (DatetimeIndex, "datetime64[ns]", pd.NaT), + ], + ) + def test_index_ctor_infer_nan_nat(self, klass, dtype, na_val): + # GH 13467 + na_list = [na_val, na_val] + expected = klass(na_list) + assert expected.dtype == dtype + + result = Index(na_list) + tm.assert_index_equal(result, expected) + + result = Index(np.array(na_list)) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "vals,dtype", + [ + ([1, 2, 3, 4, 5], "int"), + ([1.1, np.nan, 2.2, 3.0], "float"), + (["A", "B", "C", np.nan], "obj"), + ], + ) + def test_constructor_simple_new(self, vals, dtype): + index = Index(vals, name=dtype) + result = index._simple_new(index.values, dtype) + tm.assert_index_equal(result, index) + + @pytest.mark.parametrize("attr", ["values", "asi8"]) + @pytest.mark.parametrize("klass", [Index, DatetimeIndex]) + def test_constructor_dtypes_datetime(self, tz_naive_fixture, attr, klass): + # Test constructing with a datetimetz dtype + # .values produces numpy datetimes, so these are considered naive + # .asi8 produces integers, so these are considered epoch timestamps + # ^the above will be true in a later version. Right now we `.view` + # the i8 values as NS_DTYPE, effectively treating them as wall times. + index = date_range("2011-01-01", periods=5) + arg = getattr(index, attr) + index = index.tz_localize(tz_naive_fixture) + dtype = index.dtype + + # As of 2.0 astype raises on dt64.astype(dt64tz) + err = tz_naive_fixture is not None + msg = "Cannot use .astype to convert from timezone-naive dtype to" + + if attr == "asi8": + result = DatetimeIndex(arg).tz_localize(tz_naive_fixture) + tm.assert_index_equal(result, index) + elif klass is Index: + with pytest.raises(TypeError, match="unexpected keyword"): + klass(arg, tz=tz_naive_fixture) + else: + result = klass(arg, tz=tz_naive_fixture) + tm.assert_index_equal(result, index) + + if attr == "asi8": + if err: + with pytest.raises(TypeError, match=msg): + DatetimeIndex(arg).astype(dtype) + else: + result = DatetimeIndex(arg).astype(dtype) + tm.assert_index_equal(result, index) + else: + result = klass(arg, dtype=dtype) + tm.assert_index_equal(result, index) + + if attr == "asi8": + result = DatetimeIndex(list(arg)).tz_localize(tz_naive_fixture) + tm.assert_index_equal(result, index) + elif klass is Index: + with pytest.raises(TypeError, match="unexpected keyword"): + klass(arg, tz=tz_naive_fixture) + else: + result = klass(list(arg), tz=tz_naive_fixture) + tm.assert_index_equal(result, index) + + if attr == "asi8": + if err: + with pytest.raises(TypeError, match=msg): + DatetimeIndex(list(arg)).astype(dtype) + else: + result = DatetimeIndex(list(arg)).astype(dtype) + tm.assert_index_equal(result, index) + else: + result = klass(list(arg), dtype=dtype) + tm.assert_index_equal(result, index) + + @pytest.mark.parametrize("attr", ["values", "asi8"]) + @pytest.mark.parametrize("klass", [Index, TimedeltaIndex]) + def test_constructor_dtypes_timedelta(self, attr, klass): + index = timedelta_range("1 days", periods=5) + index = index._with_freq(None) # won't be preserved by constructors + dtype = index.dtype + + values = getattr(index, attr) + + result = klass(values, dtype=dtype) + tm.assert_index_equal(result, index) + + result = klass(list(values), dtype=dtype) + tm.assert_index_equal(result, index) + + @pytest.mark.parametrize("value", [[], iter([]), (_ for _ in [])]) + @pytest.mark.parametrize( + "klass", + [ + Index, + CategoricalIndex, + DatetimeIndex, + TimedeltaIndex, + ], + ) + def test_constructor_empty(self, value, klass): + empty = klass(value) + assert isinstance(empty, klass) + assert not len(empty) + + @pytest.mark.parametrize( + "empty,klass", + [ + (PeriodIndex([], freq="D"), PeriodIndex), + (PeriodIndex(iter([]), freq="D"), PeriodIndex), + (PeriodIndex((_ for _ in []), freq="D"), PeriodIndex), + (RangeIndex(step=1), RangeIndex), + (MultiIndex(levels=[[1, 2], ["blue", "red"]], codes=[[], []]), MultiIndex), + ], + ) + def test_constructor_empty_special(self, empty, klass): + assert isinstance(empty, klass) + assert not len(empty) + + @pytest.mark.parametrize( + "index", + [ + "datetime", + "float64", + "float32", + "int64", + "int32", + "period", + "range", + "repeats", + "timedelta", + "tuples", + "uint64", + "uint32", + ], + indirect=True, + ) + def test_view_with_args(self, index): + index.view("i8") + + @pytest.mark.parametrize( + "index", + [ + "string", + pytest.param("categorical", marks=pytest.mark.xfail(reason="gh-25464")), + "bool-object", + "bool-dtype", + "empty", + ], + indirect=True, + ) + def test_view_with_args_object_array_raises(self, index): + if index.dtype == bool: + msg = "When changing to a larger dtype" + with pytest.raises(ValueError, match=msg): + index.view("i8") + else: + msg = ( + r"Cannot change data-type for array of references\.|" + r"Cannot change data-type for object array\.|" + r"Cannot change data-type for array of strings\.|" + ) + with pytest.raises(TypeError, match=msg): + index.view("i8") + + @pytest.mark.parametrize( + "index", + ["int64", "int32", "range"], + indirect=True, + ) + def test_astype(self, index): + casted = index.astype("i8") + + # it works! + casted.get_loc(5) + + # pass on name + index.name = "foobar" + casted = index.astype("i8") + assert casted.name == "foobar" + + def test_equals_object(self): + # same + assert Index(["a", "b", "c"]).equals(Index(["a", "b", "c"])) + + @pytest.mark.parametrize( + "comp", [Index(["a", "b"]), Index(["a", "b", "d"]), ["a", "b", "c"]] + ) + def test_not_equals_object(self, comp): + assert not Index(["a", "b", "c"]).equals(comp) + + def test_identical(self): + # index + i1 = Index(["a", "b", "c"]) + i2 = Index(["a", "b", "c"]) + + assert i1.identical(i2) + + i1 = i1.rename("foo") + assert i1.equals(i2) + assert not i1.identical(i2) + + i2 = i2.rename("foo") + assert i1.identical(i2) + + i3 = Index([("a", "a"), ("a", "b"), ("b", "a")]) + i4 = Index([("a", "a"), ("a", "b"), ("b", "a")], tupleize_cols=False) + assert not i3.identical(i4) + + def test_is_(self): + ind = Index(range(10)) + assert ind.is_(ind) + assert ind.is_(ind.view().view().view().view()) + assert not ind.is_(Index(range(10))) + assert not ind.is_(ind.copy()) + assert not ind.is_(ind.copy(deep=False)) + assert not ind.is_(ind[:]) + assert not ind.is_(np.array(range(10))) + + # quasi-implementation dependent + assert ind.is_(ind.view()) + ind2 = ind.view() + ind2.name = "bob" + assert ind.is_(ind2) + assert ind2.is_(ind) + # doesn't matter if Indices are *actually* views of underlying data, + assert not ind.is_(Index(ind.values)) + arr = np.array(range(1, 11)) + ind1 = Index(arr, copy=False) + ind2 = Index(arr, copy=False) + assert not ind1.is_(ind2) + + def test_asof_numeric_vs_bool_raises(self): + left = Index([1, 2, 3]) + right = Index([True, False], dtype=object) + + msg = "Cannot compare dtypes int64 and bool" + with pytest.raises(TypeError, match=msg): + left.asof(right[0]) + # TODO: should right.asof(left[0]) also raise? + + with pytest.raises(InvalidIndexError, match=re.escape(str(right))): + left.asof(right) + + with pytest.raises(InvalidIndexError, match=re.escape(str(left))): + right.asof(left) + + @pytest.mark.parametrize("index", ["string"], indirect=True) + def test_booleanindex(self, index): + bool_index = np.ones(len(index), dtype=bool) + bool_index[5:30:2] = False + + sub_index = index[bool_index] + + for i, val in enumerate(sub_index): + assert sub_index.get_loc(val) == i + + sub_index = index[list(bool_index)] + for i, val in enumerate(sub_index): + assert sub_index.get_loc(val) == i + + def test_fancy(self, simple_index): + index = simple_index + sl = index[[1, 2, 3]] + for i in sl: + assert i == sl[sl.get_loc(i)] + + @pytest.mark.parametrize( + "index", + ["string", "int64", "int32", "uint64", "uint32", "float64", "float32"], + indirect=True, + ) + @pytest.mark.parametrize("dtype", [int, np.bool_]) + def test_empty_fancy(self, index, dtype, request, using_infer_string): + if dtype is np.bool_ and using_infer_string and index.dtype == "string": + request.applymarker(pytest.mark.xfail(reason="numpy behavior is buggy")) + empty_arr = np.array([], dtype=dtype) + empty_index = type(index)([], dtype=index.dtype) + + assert index[[]].identical(empty_index) + if dtype == np.bool_: + with tm.assert_produces_warning(FutureWarning, match="is deprecated"): + assert index[empty_arr].identical(empty_index) + else: + assert index[empty_arr].identical(empty_index) + + @pytest.mark.parametrize( + "index", + ["string", "int64", "int32", "uint64", "uint32", "float64", "float32"], + indirect=True, + ) + def test_empty_fancy_raises(self, index): + # DatetimeIndex is excluded, because it overrides getitem and should + # be tested separately. + empty_farr = np.array([], dtype=np.float64) + empty_index = type(index)([], dtype=index.dtype) + + assert index[[]].identical(empty_index) + # np.ndarray only accepts ndarray of int & bool dtypes, so should Index + msg = r"arrays used as indices must be of integer" + with pytest.raises(IndexError, match=msg): + index[empty_farr] + + def test_union_dt_as_obj(self, simple_index): + # TODO: Replace with fixturesult + index = simple_index + date_index = date_range("2019-01-01", periods=10) + first_cat = index.union(date_index) + second_cat = index.union(index) + + appended = Index(np.append(index, date_index.astype("O"))) + + tm.assert_index_equal(first_cat, appended) + tm.assert_index_equal(second_cat, index) + tm.assert_contains_all(index, first_cat) + tm.assert_contains_all(index, second_cat) + tm.assert_contains_all(date_index, first_cat) + + def test_map_with_tuples(self): + # GH 12766 + + # Test that returning a single tuple from an Index + # returns an Index. + index = Index(np.arange(3), dtype=np.int64) + result = index.map(lambda x: (x,)) + expected = Index([(i,) for i in index]) + tm.assert_index_equal(result, expected) + + # Test that returning a tuple from a map of a single index + # returns a MultiIndex object. + result = index.map(lambda x: (x, x == 1)) + expected = MultiIndex.from_tuples([(i, i == 1) for i in index]) + tm.assert_index_equal(result, expected) + + def test_map_with_tuples_mi(self): + # Test that returning a single object from a MultiIndex + # returns an Index. + first_level = ["foo", "bar", "baz"] + multi_index = MultiIndex.from_tuples(zip(first_level, [1, 2, 3])) + reduced_index = multi_index.map(lambda x: x[0]) + tm.assert_index_equal(reduced_index, Index(first_level)) + + @pytest.mark.parametrize( + "index", + [ + date_range("2020-01-01", freq="D", periods=10), + period_range("2020-01-01", freq="D", periods=10), + timedelta_range("1 day", periods=10), + ], + ) + def test_map_tseries_indices_return_index(self, index): + expected = Index([1] * 10) + result = index.map(lambda x: 1) + tm.assert_index_equal(expected, result) + + def test_map_tseries_indices_accsr_return_index(self): + date_index = DatetimeIndex( + date_range("2020-01-01", periods=24, freq="h"), name="hourly" + ) + result = date_index.map(lambda x: x.hour) + expected = Index(np.arange(24, dtype="int64"), name="hourly") + tm.assert_index_equal(result, expected, exact=True) + + @pytest.mark.parametrize( + "mapper", + [ + lambda values, index: {i: e for e, i in zip(values, index)}, + lambda values, index: Series(values, index), + ], + ) + def test_map_dictlike_simple(self, mapper): + # GH 12756 + expected = Index(["foo", "bar", "baz"]) + index = Index(np.arange(3), dtype=np.int64) + result = index.map(mapper(expected.values, index)) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "mapper", + [ + lambda values, index: {i: e for e, i in zip(values, index)}, + lambda values, index: Series(values, index), + ], + ) + @pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") + def test_map_dictlike(self, index, mapper, request): + # GH 12756 + if isinstance(index, CategoricalIndex): + pytest.skip("Tested in test_categorical") + elif not index.is_unique: + pytest.skip("Cannot map duplicated index") + + rng = np.arange(len(index), 0, -1, dtype=np.int64) + + if index.empty: + # to match proper result coercion for uints + expected = Index([]) + elif is_numeric_dtype(index.dtype): + expected = index._constructor(rng, dtype=index.dtype) + elif type(index) is Index and index.dtype != object: + # i.e. EA-backed, for now just Nullable + expected = Index(rng, dtype=index.dtype) + else: + expected = Index(rng) + + result = index.map(mapper(expected, index)) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "mapper", + [Series(["foo", 2.0, "baz"], index=[0, 2, -1]), {0: "foo", 2: 2.0, -1: "baz"}], + ) + def test_map_with_non_function_missing_values(self, mapper): + # GH 12756 + expected = Index([2.0, np.nan, "foo"]) + result = Index([2, 1, 0]).map(mapper) + + tm.assert_index_equal(expected, result) + + def test_map_na_exclusion(self): + index = Index([1.5, np.nan, 3, np.nan, 5]) + + result = index.map(lambda x: x * 2, na_action="ignore") + expected = index * 2 + tm.assert_index_equal(result, expected) + + def test_map_defaultdict(self): + index = Index([1, 2, 3]) + default_dict = defaultdict(lambda: "blank") + default_dict[1] = "stuff" + result = index.map(default_dict) + expected = Index(["stuff", "blank", "blank"]) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("name,expected", [("foo", "foo"), ("bar", None)]) + def test_append_empty_preserve_name(self, name, expected): + left = Index([], name="foo") + right = Index([1, 2, 3], name=name) + + msg = "The behavior of array concatenation with empty entries is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = left.append(right) + assert result.name == expected + + @pytest.mark.parametrize( + "index, expected", + [ + ("string", False), + ("bool-object", False), + ("bool-dtype", False), + ("categorical", False), + ("int64", True), + ("int32", True), + ("uint64", True), + ("uint32", True), + ("datetime", False), + ("float64", True), + ("float32", True), + ], + indirect=["index"], + ) + def test_is_numeric(self, index, expected): + assert is_any_real_numeric_dtype(index) is expected + + @pytest.mark.parametrize( + "index, expected", + [ + ("string", True), + ("bool-object", True), + ("bool-dtype", False), + ("categorical", False), + ("int64", False), + ("int32", False), + ("uint64", False), + ("uint32", False), + ("datetime", False), + ("float64", False), + ("float32", False), + ], + indirect=["index"], + ) + def test_is_object(self, index, expected, using_infer_string): + if using_infer_string and index.dtype == "string" and expected: + expected = False + assert is_object_dtype(index) is expected + + def test_summary(self, index): + index._summary() + + def test_format_bug(self): + # GH 14626 + # windows has different precision on datetime.datetime.now (it doesn't + # include us since the default for Timestamp shows these but Index + # formatting does not we are skipping) + now = datetime.now() + msg = r"Index\.format is deprecated" + + if not str(now).endswith("000"): + index = Index([now]) + with tm.assert_produces_warning(FutureWarning, match=msg): + formatted = index.format() + expected = [str(index[0])] + assert formatted == expected + + with tm.assert_produces_warning(FutureWarning, match=msg): + Index([]).format() + + @pytest.mark.parametrize("vals", [[1, 2.0 + 3.0j, 4.0], ["a", "b", "c"]]) + def test_format_missing(self, vals, nulls_fixture): + # 2845 + vals = list(vals) # Copy for each iteration + vals.append(nulls_fixture) + index = Index(vals, dtype=object) + # TODO: case with complex dtype? + + msg = r"Index\.format is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + formatted = index.format() + null_repr = "NaN" if isinstance(nulls_fixture, float) else str(nulls_fixture) + expected = [str(index[0]), str(index[1]), str(index[2]), null_repr] + + assert formatted == expected + assert index[3] is nulls_fixture + + @pytest.mark.parametrize("op", ["any", "all"]) + def test_logical_compat(self, op, simple_index): + index = simple_index + left = getattr(index, op)() + assert left == getattr(index.values, op)() + right = getattr(index.to_series(), op)() + # left might not match right exactly in e.g. string cases where the + # because we use np.any/all instead of .any/all + assert bool(left) == bool(right) + + @pytest.mark.parametrize( + "index", ["string", "int64", "int32", "float64", "float32"], indirect=True + ) + def test_drop_by_str_label(self, index): + n = len(index) + drop = index[list(range(5, 10))] + dropped = index.drop(drop) + + expected = index[list(range(5)) + list(range(10, n))] + tm.assert_index_equal(dropped, expected) + + dropped = index.drop(index[0]) + expected = index[1:] + tm.assert_index_equal(dropped, expected) + + @pytest.mark.parametrize( + "index", ["string", "int64", "int32", "float64", "float32"], indirect=True + ) + @pytest.mark.parametrize("keys", [["foo", "bar"], ["1", "bar"]]) + def test_drop_by_str_label_raises_missing_keys(self, index, keys): + with pytest.raises(KeyError, match=""): + index.drop(keys) + + @pytest.mark.parametrize( + "index", ["string", "int64", "int32", "float64", "float32"], indirect=True + ) + def test_drop_by_str_label_errors_ignore(self, index): + n = len(index) + drop = index[list(range(5, 10))] + mixed = drop.tolist() + ["foo"] + dropped = index.drop(mixed, errors="ignore") + + expected = index[list(range(5)) + list(range(10, n))] + tm.assert_index_equal(dropped, expected) + + dropped = index.drop(["foo", "bar"], errors="ignore") + expected = index[list(range(n))] + tm.assert_index_equal(dropped, expected) + + def test_drop_by_numeric_label_loc(self): + # TODO: Parametrize numeric and str tests after self.strIndex fixture + index = Index([1, 2, 3]) + dropped = index.drop(1) + expected = Index([2, 3]) + + tm.assert_index_equal(dropped, expected) + + def test_drop_by_numeric_label_raises_missing_keys(self): + index = Index([1, 2, 3]) + with pytest.raises(KeyError, match=""): + index.drop([3, 4]) + + @pytest.mark.parametrize( + "key,expected", [(4, Index([1, 2, 3])), ([3, 4, 5], Index([1, 2]))] + ) + def test_drop_by_numeric_label_errors_ignore(self, key, expected): + index = Index([1, 2, 3]) + dropped = index.drop(key, errors="ignore") + + tm.assert_index_equal(dropped, expected) + + @pytest.mark.parametrize( + "values", + [["a", "b", ("c", "d")], ["a", ("c", "d"), "b"], [("c", "d"), "a", "b"]], + ) + @pytest.mark.parametrize("to_drop", [[("c", "d"), "a"], ["a", ("c", "d")]]) + def test_drop_tuple(self, values, to_drop): + # GH 18304 + index = Index(values) + expected = Index(["b"], dtype=object) + + result = index.drop(to_drop) + tm.assert_index_equal(result, expected) + + removed = index.drop(to_drop[0]) + for drop_me in to_drop[1], [to_drop[1]]: + result = removed.drop(drop_me) + tm.assert_index_equal(result, expected) + + removed = index.drop(to_drop[1]) + msg = rf"\"\[{re.escape(to_drop[1].__repr__())}\] not found in axis\"" + for drop_me in to_drop[1], [to_drop[1]]: + with pytest.raises(KeyError, match=msg): + removed.drop(drop_me) + + @pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") + def test_drop_with_duplicates_in_index(self, index): + # GH38051 + if len(index) == 0 or isinstance(index, MultiIndex): + pytest.skip("Test doesn't make sense for empty MultiIndex") + if isinstance(index, IntervalIndex) and not IS64: + pytest.skip("Cannot test IntervalIndex with int64 dtype on 32 bit platform") + index = index.unique().repeat(2) + expected = index[2:] + result = index.drop(index[0]) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "attr", + [ + "is_monotonic_increasing", + "is_monotonic_decreasing", + "_is_strictly_monotonic_increasing", + "_is_strictly_monotonic_decreasing", + ], + ) + def test_is_monotonic_incomparable(self, attr): + index = Index([5, datetime.now(), 7]) + assert not getattr(index, attr) + + @pytest.mark.parametrize("values", [["foo", "bar", "quux"], {"foo", "bar", "quux"}]) + @pytest.mark.parametrize( + "index,expected", + [ + (Index(["qux", "baz", "foo", "bar"]), np.array([False, False, True, True])), + (Index([]), np.array([], dtype=bool)), # empty + ], + ) + def test_isin(self, values, index, expected): + result = index.isin(values) + tm.assert_numpy_array_equal(result, expected) + + def test_isin_nan_common_object( + self, nulls_fixture, nulls_fixture2, using_infer_string + ): + # Test cartesian product of null fixtures and ensure that we don't + # mangle the various types (save a corner case with PyPy) + idx = Index(["a", nulls_fixture]) + + # all nans are the same + if ( + isinstance(nulls_fixture, float) + and isinstance(nulls_fixture2, float) + and math.isnan(nulls_fixture) + and math.isnan(nulls_fixture2) + ): + tm.assert_numpy_array_equal( + idx.isin([nulls_fixture2]), + np.array([False, True]), + ) + + elif nulls_fixture is nulls_fixture2: # should preserve NA type + tm.assert_numpy_array_equal( + idx.isin([nulls_fixture2]), + np.array([False, True]), + ) + + elif using_infer_string and idx.dtype == "string": + tm.assert_numpy_array_equal( + idx.isin([nulls_fixture2]), + np.array([False, True]), + ) + + else: + tm.assert_numpy_array_equal( + idx.isin([nulls_fixture2]), + np.array([False, False]), + ) + + def test_isin_nan_common_float64(self, nulls_fixture, float_numpy_dtype): + dtype = float_numpy_dtype + + if nulls_fixture is pd.NaT or nulls_fixture is pd.NA: + # Check 1) that we cannot construct a float64 Index with this value + # and 2) that with an NaN we do not have .isin(nulls_fixture) + msg = ( + r"float\(\) argument must be a string or a (real )?number, " + f"not {repr(type(nulls_fixture).__name__)}" + ) + with pytest.raises(TypeError, match=msg): + Index([1.0, nulls_fixture], dtype=dtype) + + idx = Index([1.0, np.nan], dtype=dtype) + assert not idx.isin([nulls_fixture]).any() + return + + idx = Index([1.0, nulls_fixture], dtype=dtype) + res = idx.isin([np.nan]) + tm.assert_numpy_array_equal(res, np.array([False, True])) + + # we cannot compare NaT with NaN + res = idx.isin([pd.NaT]) + tm.assert_numpy_array_equal(res, np.array([False, False])) + + @pytest.mark.parametrize("level", [0, -1]) + @pytest.mark.parametrize( + "index", + [ + Index(["qux", "baz", "foo", "bar"]), + Index([1.0, 2.0, 3.0, 4.0], dtype=np.float64), + ], + ) + def test_isin_level_kwarg(self, level, index): + values = index.tolist()[-2:] + ["nonexisting"] + + expected = np.array([False, False, True, True]) + tm.assert_numpy_array_equal(expected, index.isin(values, level=level)) + + index.name = "foobar" + tm.assert_numpy_array_equal(expected, index.isin(values, level="foobar")) + + def test_isin_level_kwarg_bad_level_raises(self, index): + for level in [10, index.nlevels, -(index.nlevels + 1)]: + with pytest.raises(IndexError, match="Too many levels"): + index.isin([], level=level) + + @pytest.mark.parametrize("label", [1.0, "foobar", "xyzzy", np.nan]) + def test_isin_level_kwarg_bad_label_raises(self, label, index): + if isinstance(index, MultiIndex): + index = index.rename(["foo", "bar"] + index.names[2:]) + msg = f"'Level {label} not found'" + else: + index = index.rename("foo") + msg = rf"Requested level \({label}\) does not match index name \(foo\)" + with pytest.raises(KeyError, match=msg): + index.isin([], level=label) + + @pytest.mark.parametrize("empty", [[], Series(dtype=object), np.array([])]) + def test_isin_empty(self, empty): + # see gh-16991 + index = Index(["a", "b"]) + expected = np.array([False, False]) + + result = index.isin(empty) + tm.assert_numpy_array_equal(expected, result) + + def test_isin_string_null(self, string_dtype_no_object): + # GH#55821 + index = Index(["a", "b"], dtype=string_dtype_no_object) + result = index.isin([None]) + expected = np.array([False, False]) + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize( + "values", + [ + [1, 2, 3, 4], + [1.0, 2.0, 3.0, 4.0], + [True, True, True, True], + ["foo", "bar", "baz", "qux"], + date_range("2018-01-01", freq="D", periods=4), + ], + ) + def test_boolean_cmp(self, values): + index = Index(values) + result = index == values + expected = np.array([True, True, True, True], dtype=bool) + + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize("index", ["string"], indirect=True) + @pytest.mark.parametrize("name,level", [(None, 0), ("a", "a")]) + def test_get_level_values(self, index, name, level): + expected = index.copy() + if name: + expected.name = name + + result = expected.get_level_values(level) + tm.assert_index_equal(result, expected) + + def test_slice_keep_name(self): + index = Index(["a", "b"], name="asdf") + assert index.name == index[1:].name + + @pytest.mark.parametrize( + "index", + [ + "string", + "datetime", + "int64", + "int32", + "uint64", + "uint32", + "float64", + "float32", + ], + indirect=True, + ) + def test_join_self(self, index, join_type): + result = index.join(index, how=join_type) + expected = index + if join_type == "outer": + expected = expected.sort_values() + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("method", ["strip", "rstrip", "lstrip"]) + def test_str_attribute(self, method): + # GH9068 + index = Index([" jack", "jill ", " jesse ", "frank"]) + expected = Index([getattr(str, method)(x) for x in index.values]) + + result = getattr(index.str, method)() + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "index", + [ + Index(range(5)), + date_range("2020-01-01", periods=10), + MultiIndex.from_tuples([("foo", "1"), ("bar", "3")]), + period_range(start="2000", end="2010", freq="Y"), + ], + ) + def test_str_attribute_raises(self, index): + with pytest.raises(AttributeError, match="only use .str accessor"): + index.str.repeat(2) + + @pytest.mark.parametrize( + "expand,expected", + [ + (None, Index([["a", "b", "c"], ["d", "e"], ["f"]])), + (False, Index([["a", "b", "c"], ["d", "e"], ["f"]])), + ( + True, + MultiIndex.from_tuples( + [("a", "b", "c"), ("d", "e", np.nan), ("f", np.nan, np.nan)] + ), + ), + ], + ) + def test_str_split(self, expand, expected): + index = Index(["a b c", "d e", "f"]) + if expand is not None: + result = index.str.split(expand=expand) + else: + result = index.str.split() + + tm.assert_index_equal(result, expected) + + def test_str_bool_return(self): + # test boolean case, should return np.array instead of boolean Index + index = Index(["a1", "a2", "b1", "b2"]) + result = index.str.startswith("a") + expected = np.array([True, True, False, False]) + + tm.assert_numpy_array_equal(result, expected) + assert isinstance(result, np.ndarray) + + def test_str_bool_series_indexing(self): + index = Index(["a1", "a2", "b1", "b2"]) + s = Series(range(4), index=index) + + result = s[s.index.str.startswith("a")] + expected = Series(range(2), index=["a1", "a2"]) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize( + "index,expected", [(Index(list("abcd")), True), (Index(range(4)), False)] + ) + def test_tab_completion(self, index, expected): + # GH 9910 + result = "str" in dir(index) + assert result == expected + + def test_indexing_doesnt_change_class(self): + index = Index([1, 2, 3, "a", "b", "c"]) + + assert index[1:3].identical(Index([2, 3], dtype=np.object_)) + assert index[[0, 1]].identical(Index([1, 2], dtype=np.object_)) + + def test_outer_join_sort(self): + left_index = Index(np.random.default_rng(2).permutation(15)) + right_index = date_range("2020-01-01", periods=10) + + with tm.assert_produces_warning(RuntimeWarning): + result = left_index.join(right_index, how="outer") + + with tm.assert_produces_warning(RuntimeWarning): + expected = left_index.astype(object).union(right_index.astype(object)) + + tm.assert_index_equal(result, expected) + + def test_take_fill_value(self): + # GH 12631 + index = Index(list("ABC"), name="xxx") + result = index.take(np.array([1, 0, -1])) + expected = Index(list("BAC"), name="xxx") + tm.assert_index_equal(result, expected) + + # fill_value + result = index.take(np.array([1, 0, -1]), fill_value=True) + expected = Index(["B", "A", np.nan], name="xxx") + tm.assert_index_equal(result, expected) + + # allow_fill=False + result = index.take(np.array([1, 0, -1]), allow_fill=False, fill_value=True) + expected = Index(["B", "A", "C"], name="xxx") + tm.assert_index_equal(result, expected) + + def test_take_fill_value_none_raises(self): + index = Index(list("ABC"), name="xxx") + msg = ( + "When allow_fill=True and fill_value is not None, " + "all indices must be >= -1" + ) + + with pytest.raises(ValueError, match=msg): + index.take(np.array([1, 0, -2]), fill_value=True) + with pytest.raises(ValueError, match=msg): + index.take(np.array([1, 0, -5]), fill_value=True) + + def test_take_bad_bounds_raises(self): + index = Index(list("ABC"), name="xxx") + with pytest.raises(IndexError, match="out of bounds"): + index.take(np.array([1, -5])) + + @pytest.mark.parametrize("name", [None, "foobar"]) + @pytest.mark.parametrize( + "labels", + [ + [], + np.array([]), + ["A", "B", "C"], + ["C", "B", "A"], + np.array(["A", "B", "C"]), + np.array(["C", "B", "A"]), + # Must preserve name even if dtype changes + date_range("20130101", periods=3).values, + date_range("20130101", periods=3).tolist(), + ], + ) + def test_reindex_preserves_name_if_target_is_list_or_ndarray(self, name, labels): + # GH6552 + index = Index([0, 1, 2]) + index.name = name + assert index.reindex(labels)[0].name == name + + @pytest.mark.parametrize("labels", [[], np.array([]), np.array([], dtype=np.int64)]) + def test_reindex_preserves_type_if_target_is_empty_list_or_array(self, labels): + # GH7774 + index = Index(list("abc")) + assert index.reindex(labels)[0].dtype.type == index.dtype.type + + @pytest.mark.parametrize( + "labels,dtype", + [ + (DatetimeIndex([]), np.datetime64), + ], + ) + def test_reindex_doesnt_preserve_type_if_target_is_empty_index(self, labels, dtype): + # GH7774 + index = Index(list("abc")) + assert index.reindex(labels)[0].dtype.type == dtype + + def test_reindex_doesnt_preserve_type_if_target_is_empty_index_numeric( + self, any_real_numpy_dtype + ): + # GH7774 + dtype = any_real_numpy_dtype + index = Index(list("abc")) + labels = Index([], dtype=dtype) + assert index.reindex(labels)[0].dtype == dtype + + def test_reindex_no_type_preserve_target_empty_mi(self): + index = Index(list("abc")) + result = index.reindex( + MultiIndex([Index([], np.int64), Index([], np.float64)], [[], []]) + )[0] + assert result.levels[0].dtype.type == np.int64 + assert result.levels[1].dtype.type == np.float64 + + def test_reindex_ignoring_level(self): + # GH#35132 + idx = Index([1, 2, 3], name="x") + idx2 = Index([1, 2, 3, 4], name="x") + expected = Index([1, 2, 3, 4], name="x") + result, _ = idx.reindex(idx2, level="x") + tm.assert_index_equal(result, expected) + + def test_groupby(self): + index = Index(range(5)) + result = index.groupby(np.array([1, 1, 2, 2, 2])) + expected = {1: Index([0, 1]), 2: Index([2, 3, 4])} + + tm.assert_dict_equal(result, expected) + + @pytest.mark.parametrize( + "mi,expected", + [ + (MultiIndex.from_tuples([(1, 2), (4, 5)]), np.array([True, True])), + (MultiIndex.from_tuples([(1, 2), (4, 6)]), np.array([True, False])), + ], + ) + def test_equals_op_multiindex(self, mi, expected): + # GH9785 + # test comparisons of multiindex + df = DataFrame( + [3, 6], + columns=["c"], + index=MultiIndex.from_arrays([[1, 4], [2, 5]], names=["a", "b"]), + ) + + result = df.index == mi + tm.assert_numpy_array_equal(result, expected) + + def test_equals_op_multiindex_identify(self): + df = DataFrame( + [3, 6], + columns=["c"], + index=MultiIndex.from_arrays([[1, 4], [2, 5]], names=["a", "b"]), + ) + + result = df.index == df.index + expected = np.array([True, True]) + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize( + "index", + [ + MultiIndex.from_tuples([(1, 2), (4, 5), (8, 9)]), + Index(["foo", "bar", "baz"]), + ], + ) + def test_equals_op_mismatched_multiindex_raises(self, index): + df = DataFrame( + [3, 6], + columns=["c"], + index=MultiIndex.from_arrays([[1, 4], [2, 5]], names=["a", "b"]), + ) + + with pytest.raises(ValueError, match="Lengths must match"): + df.index == index + + def test_equals_op_index_vs_mi_same_length(self, using_infer_string): + mi = MultiIndex.from_tuples([(1, 2), (4, 5), (8, 9)]) + index = Index(["foo", "bar", "baz"]) + + result = mi == index + expected = np.array([False, False, False]) + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize( + "dt_conv, arg", + [ + (pd.to_datetime, ["2000-01-01", "2000-01-02"]), + (pd.to_timedelta, ["01:02:03", "01:02:04"]), + ], + ) + def test_dt_conversion_preserves_name(self, dt_conv, arg): + # GH 10875 + index = Index(arg, name="label") + assert index.name == dt_conv(index).name + + def test_cached_properties_not_settable(self): + index = Index([1, 2, 3]) + with pytest.raises(AttributeError, match="Can't set attribute"): + index.is_unique = False + + def test_tab_complete_warning(self, ip): + # https://github.com/pandas-dev/pandas/issues/16409 + pytest.importorskip("IPython", minversion="6.0.0") + from IPython.core.completer import provisionalcompleter + + code = "import pandas as pd; idx = pd.Index([1, 2])" + ip.run_cell(code) + + # GH 31324 newer jedi version raises Deprecation warning; + # appears resolved 2021-02-02 + with tm.assert_produces_warning(None, raise_on_extra_warnings=False): + with provisionalcompleter("ignore"): + list(ip.Completer.completions("idx.", 4)) + + def test_contains_method_removed(self, index): + # GH#30103 method removed for all types except IntervalIndex + if isinstance(index, IntervalIndex): + index.contains(1) + else: + msg = f"'{type(index).__name__}' object has no attribute 'contains'" + with pytest.raises(AttributeError, match=msg): + index.contains(1) + + def test_sortlevel(self): + index = Index([5, 4, 3, 2, 1]) + with pytest.raises(Exception, match="ascending must be a single bool value or"): + index.sortlevel(ascending="True") + + with pytest.raises( + Exception, match="ascending must be a list of bool values of length 1" + ): + index.sortlevel(ascending=[True, True]) + + with pytest.raises(Exception, match="ascending must be a bool value"): + index.sortlevel(ascending=["True"]) + + expected = Index([1, 2, 3, 4, 5]) + result = index.sortlevel(ascending=[True]) + tm.assert_index_equal(result[0], expected) + + expected = Index([1, 2, 3, 4, 5]) + result = index.sortlevel(ascending=True) + tm.assert_index_equal(result[0], expected) + + expected = Index([5, 4, 3, 2, 1]) + result = index.sortlevel(ascending=False) + tm.assert_index_equal(result[0], expected) + + def test_sortlevel_na_position(self): + # GH#51612 + idx = Index([1, np.nan]) + result = idx.sortlevel(na_position="first")[0] + expected = Index([np.nan, 1]) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "periods, expected_results", + [ + (1, [np.nan, 10, 10, 10, 10]), + (2, [np.nan, np.nan, 20, 20, 20]), + (3, [np.nan, np.nan, np.nan, 30, 30]), + ], + ) + def test_index_diff(self, periods, expected_results): + # GH#19708 + idx = Index([10, 20, 30, 40, 50]) + result = idx.diff(periods) + expected = Index(expected_results) + + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "decimals, expected_results", + [ + (0, [1.0, 2.0, 3.0]), + (1, [1.2, 2.3, 3.5]), + (2, [1.23, 2.35, 3.46]), + ], + ) + def test_index_round(self, decimals, expected_results): + # GH#19708 + idx = Index([1.234, 2.345, 3.456]) + result = idx.round(decimals) + expected = Index(expected_results) + + tm.assert_index_equal(result, expected) + + +class TestMixedIntIndex: + # Mostly the tests from common.py for which the results differ + # in py2 and py3 because ints and strings are uncomparable in py3 + # (GH 13514) + @pytest.fixture + def simple_index(self) -> Index: + return Index([0, "a", 1, "b", 2, "c"]) + + def test_argsort(self, simple_index): + index = simple_index + with pytest.raises(TypeError, match="'>|<' not supported"): + index.argsort() + + def test_numpy_argsort(self, simple_index): + index = simple_index + with pytest.raises(TypeError, match="'>|<' not supported"): + np.argsort(index) + + def test_copy_name(self, simple_index): + # Check that "name" argument passed at initialization is honoured + # GH12309 + index = simple_index + + first = type(index)(index, copy=True, name="mario") + second = type(first)(first, copy=False) + + # Even though "copy=False", we want a new object. + assert first is not second + tm.assert_index_equal(first, second) + + assert first.name == "mario" + assert second.name == "mario" + + s1 = Series(2, index=first) + s2 = Series(3, index=second[:-1]) + + s3 = s1 * s2 + + assert s3.index.name == "mario" + + def test_copy_name2(self): + # Check that adding a "name" parameter to the copy is honored + # GH14302 + index = Index([1, 2], name="MyName") + index1 = index.copy() + + tm.assert_index_equal(index, index1) + + index2 = index.copy(name="NewName") + tm.assert_index_equal(index, index2, check_names=False) + assert index.name == "MyName" + assert index2.name == "NewName" + + def test_unique_na(self): + idx = Index([2, np.nan, 2, 1], name="my_index") + expected = Index([2, np.nan, 1], name="my_index") + result = idx.unique() + tm.assert_index_equal(result, expected) + + def test_logical_compat(self, simple_index): + index = simple_index + assert index.all() == index.values.all() + assert index.any() == index.values.any() + + @pytest.mark.parametrize("how", ["any", "all"]) + @pytest.mark.parametrize("dtype", [None, object, "category"]) + @pytest.mark.parametrize( + "vals,expected", + [ + ([1, 2, 3], [1, 2, 3]), + ([1.0, 2.0, 3.0], [1.0, 2.0, 3.0]), + ([1.0, 2.0, np.nan, 3.0], [1.0, 2.0, 3.0]), + (["A", "B", "C"], ["A", "B", "C"]), + (["A", np.nan, "B", "C"], ["A", "B", "C"]), + ], + ) + def test_dropna(self, how, dtype, vals, expected): + # GH 6194 + index = Index(vals, dtype=dtype) + result = index.dropna(how=how) + expected = Index(expected, dtype=dtype) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("how", ["any", "all"]) + @pytest.mark.parametrize( + "index,expected", + [ + ( + DatetimeIndex(["2011-01-01", "2011-01-02", "2011-01-03"]), + DatetimeIndex(["2011-01-01", "2011-01-02", "2011-01-03"]), + ), + ( + DatetimeIndex(["2011-01-01", "2011-01-02", "2011-01-03", pd.NaT]), + DatetimeIndex(["2011-01-01", "2011-01-02", "2011-01-03"]), + ), + ( + TimedeltaIndex(["1 days", "2 days", "3 days"]), + TimedeltaIndex(["1 days", "2 days", "3 days"]), + ), + ( + TimedeltaIndex([pd.NaT, "1 days", "2 days", "3 days", pd.NaT]), + TimedeltaIndex(["1 days", "2 days", "3 days"]), + ), + ( + PeriodIndex(["2012-02", "2012-04", "2012-05"], freq="M"), + PeriodIndex(["2012-02", "2012-04", "2012-05"], freq="M"), + ), + ( + PeriodIndex(["2012-02", "2012-04", "NaT", "2012-05"], freq="M"), + PeriodIndex(["2012-02", "2012-04", "2012-05"], freq="M"), + ), + ], + ) + def test_dropna_dt_like(self, how, index, expected): + result = index.dropna(how=how) + tm.assert_index_equal(result, expected) + + def test_dropna_invalid_how_raises(self): + msg = "invalid how option: xxx" + with pytest.raises(ValueError, match=msg): + Index([1, 2, 3]).dropna(how="xxx") + + @pytest.mark.parametrize( + "index", + [ + Index([np.nan]), + Index([np.nan, 1]), + Index([1, 2, np.nan]), + Index(["a", "b", np.nan]), + pd.to_datetime(["NaT"]), + pd.to_datetime(["NaT", "2000-01-01"]), + pd.to_datetime(["2000-01-01", "NaT", "2000-01-02"]), + pd.to_timedelta(["1 day", "NaT"]), + ], + ) + def test_is_monotonic_na(self, index): + assert index.is_monotonic_increasing is False + assert index.is_monotonic_decreasing is False + assert index._is_strictly_monotonic_increasing is False + assert index._is_strictly_monotonic_decreasing is False + + @pytest.mark.parametrize("dtype", ["f8", "m8[ns]", "M8[us]"]) + @pytest.mark.parametrize("unique_first", [True, False]) + def test_is_monotonic_unique_na(self, dtype, unique_first): + # GH 55755 + index = Index([None, 1, 1], dtype=dtype) + if unique_first: + assert index.is_unique is False + assert index.is_monotonic_increasing is False + assert index.is_monotonic_decreasing is False + else: + assert index.is_monotonic_increasing is False + assert index.is_monotonic_decreasing is False + assert index.is_unique is False + + def test_int_name_format(self, frame_or_series): + index = Index(["a", "b", "c"], name=0) + result = frame_or_series(list(range(3)), index=index) + assert "0" in repr(result) + + def test_str_to_bytes_raises(self): + # GH 26447 + index = Index([str(x) for x in range(10)]) + msg = "^'str' object cannot be interpreted as an integer$" + with pytest.raises(TypeError, match=msg): + bytes(index) + + @pytest.mark.filterwarnings("ignore:elementwise comparison failed:FutureWarning") + def test_index_with_tuple_bool(self): + # GH34123 + # TODO: also this op right now produces FutureWarning from numpy + # https://github.com/numpy/numpy/issues/11521 + idx = Index([("a", "b"), ("b", "c"), ("c", "a")]) + result = idx == ("c", "a") + expected = np.array([False, False, True]) + tm.assert_numpy_array_equal(result, expected) + + +class TestIndexUtils: + @pytest.mark.parametrize( + "data, names, expected", + [ + ([[1, 2, 3]], None, Index([1, 2, 3])), + ([[1, 2, 3]], ["name"], Index([1, 2, 3], name="name")), + ( + [["a", "a"], ["c", "d"]], + None, + MultiIndex([["a"], ["c", "d"]], [[0, 0], [0, 1]]), + ), + ( + [["a", "a"], ["c", "d"]], + ["L1", "L2"], + MultiIndex([["a"], ["c", "d"]], [[0, 0], [0, 1]], names=["L1", "L2"]), + ), + ], + ) + def test_ensure_index_from_sequences(self, data, names, expected): + result = ensure_index_from_sequences(data, names) + tm.assert_index_equal(result, expected) + + def test_ensure_index_mixed_closed_intervals(self): + # GH27172 + intervals = [ + pd.Interval(0, 1, closed="left"), + pd.Interval(1, 2, closed="right"), + pd.Interval(2, 3, closed="neither"), + pd.Interval(3, 4, closed="both"), + ] + result = ensure_index(intervals) + expected = Index(intervals, dtype=object) + tm.assert_index_equal(result, expected) + + def test_ensure_index_uint64(self): + # with both 0 and a large-uint64, np.array will infer to float64 + # https://github.com/numpy/numpy/issues/19146 + # but a more accurate choice would be uint64 + values = [0, np.iinfo(np.uint64).max] + + result = ensure_index(values) + assert list(result) == values + + expected = Index(values, dtype="uint64") + tm.assert_index_equal(result, expected) + + def test_get_combined_index(self): + result = _get_combined_index([]) + expected = Index([]) + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize( + "opname", + [ + "eq", + "ne", + "le", + "lt", + "ge", + "gt", + "add", + "radd", + "sub", + "rsub", + "mul", + "rmul", + "truediv", + "rtruediv", + "floordiv", + "rfloordiv", + "pow", + "rpow", + "mod", + "divmod", + ], +) +def test_generated_op_names(opname, index): + opname = f"__{opname}__" + method = getattr(index, opname) + assert method.__name__ == opname + + +@pytest.mark.parametrize( + "klass", + [ + partial(CategoricalIndex, data=[1]), + partial(DatetimeIndex, data=["2020-01-01"]), + partial(PeriodIndex, data=["2020-01-01"]), + partial(TimedeltaIndex, data=["1 day"]), + partial(RangeIndex, data=range(1)), + partial(IntervalIndex, data=[pd.Interval(0, 1)]), + partial(Index, data=["a"], dtype=object), + partial(MultiIndex, levels=[1], codes=[0]), + ], +) +def test_index_subclass_constructor_wrong_kwargs(klass): + # GH #19348 + with pytest.raises(TypeError, match="unexpected keyword argument"): + klass(foo="bar") + + +def test_deprecated_fastpath(): + msg = "[Uu]nexpected keyword argument" + with pytest.raises(TypeError, match=msg): + Index(np.array(["a", "b"], dtype=object), name="test", fastpath=True) + + with pytest.raises(TypeError, match=msg): + Index(np.array([1, 2, 3], dtype="int64"), name="test", fastpath=True) + + with pytest.raises(TypeError, match=msg): + RangeIndex(0, 5, 2, name="test", fastpath=True) + + with pytest.raises(TypeError, match=msg): + CategoricalIndex(["a", "b", "c"], name="test", fastpath=True) + + +def test_shape_of_invalid_index(): + # Pre-2.0, it was possible to create "invalid" index objects backed by + # a multi-dimensional array (see https://github.com/pandas-dev/pandas/issues/27125 + # about this). However, as long as this is not solved in general,this test ensures + # that the returned shape is consistent with this underlying array for + # compat with matplotlib (see https://github.com/pandas-dev/pandas/issues/27775) + idx = Index([0, 1, 2, 3]) + with pytest.raises(ValueError, match="Multi-dimensional indexing"): + # GH#30588 multi-dimensional indexing deprecated + idx[:, None] + + +@pytest.mark.parametrize("dtype", [None, np.int64, np.uint64, np.float64]) +def test_validate_1d_input(dtype): + # GH#27125 check that we do not have >1-dimensional input + msg = "Index data must be 1-dimensional" + + arr = np.arange(8).reshape(2, 2, 2) + with pytest.raises(ValueError, match=msg): + Index(arr, dtype=dtype) + + df = DataFrame(arr.reshape(4, 2)) + with pytest.raises(ValueError, match=msg): + Index(df, dtype=dtype) + + # GH#13601 trying to assign a multi-dimensional array to an index is not allowed + ser = Series(0, range(4)) + with pytest.raises(ValueError, match=msg): + ser.index = np.array([[2, 3]] * 4, dtype=dtype) + + +@pytest.mark.parametrize( + "klass, extra_kwargs", + [ + [Index, {}], + *[[lambda x: Index(x, dtype=dtyp), {}] for dtyp in tm.ALL_REAL_NUMPY_DTYPES], + [DatetimeIndex, {}], + [TimedeltaIndex, {}], + [PeriodIndex, {"freq": "Y"}], + ], +) +def test_construct_from_memoryview(klass, extra_kwargs): + # GH 13120 + result = klass(memoryview(np.arange(2000, 2005)), **extra_kwargs) + expected = klass(list(range(2000, 2005)), **extra_kwargs) + tm.assert_index_equal(result, expected, exact=True) + + +@pytest.mark.parametrize("op", [operator.lt, operator.gt]) +def test_nan_comparison_same_object(op): + # GH#47105 + idx = Index([np.nan]) + expected = np.array([False]) + + result = op(idx, idx) + tm.assert_numpy_array_equal(result, expected) + + result = op(idx, idx.copy()) + tm.assert_numpy_array_equal(result, expected) + + +@td.skip_if_no("pyarrow") +def test_is_monotonic_pyarrow_list_type(): + # GH 57333 + import pyarrow as pa + + idx = Index([[1], [2, 3]], dtype=pd.ArrowDtype(pa.list_(pa.int64()))) + assert not idx.is_monotonic_increasing + assert not idx.is_monotonic_decreasing diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_common.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_common.py new file mode 100644 index 0000000000000000000000000000000000000000..c08fcdaedbefe06e21b8abc90f04add21c253244 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_common.py @@ -0,0 +1,513 @@ +""" +Collection of tests asserting things that should be true for +any index subclass except for MultiIndex. Makes use of the `index_flat` +fixture defined in pandas/conftest.py. +""" +from copy import ( + copy, + deepcopy, +) +import re + +import numpy as np +import pytest + +from pandas.compat import IS64 +from pandas.compat.numpy import np_version_gte1p25 + +from pandas.core.dtypes.common import ( + is_integer_dtype, + is_numeric_dtype, +) + +import pandas as pd +from pandas import ( + CategoricalIndex, + MultiIndex, + PeriodIndex, + RangeIndex, +) +import pandas._testing as tm + + +class TestCommon: + @pytest.mark.parametrize("name", [None, "new_name"]) + def test_to_frame(self, name, index_flat, using_copy_on_write): + # see GH#15230, GH#22580 + idx = index_flat + + if name: + idx_name = name + else: + idx_name = idx.name or 0 + + df = idx.to_frame(name=idx_name) + + assert df.index is idx + assert len(df.columns) == 1 + assert df.columns[0] == idx_name + if not using_copy_on_write: + assert df[idx_name].values is not idx.values + + df = idx.to_frame(index=False, name=idx_name) + assert df.index is not idx + + def test_droplevel(self, index_flat): + # GH 21115 + # MultiIndex is tested separately in test_multi.py + index = index_flat + + assert index.droplevel([]).equals(index) + + for level in [index.name, [index.name]]: + if isinstance(index.name, tuple) and level is index.name: + # GH 21121 : droplevel with tuple name + continue + msg = ( + "Cannot remove 1 levels from an index with 1 levels: at least one " + "level must be left." + ) + with pytest.raises(ValueError, match=msg): + index.droplevel(level) + + for level in "wrong", ["wrong"]: + with pytest.raises( + KeyError, + match=r"'Requested level \(wrong\) does not match index name \(None\)'", + ): + index.droplevel(level) + + def test_constructor_non_hashable_name(self, index_flat): + # GH 20527 + index = index_flat + + message = "Index.name must be a hashable type" + renamed = [["1"]] + + # With .rename() + with pytest.raises(TypeError, match=message): + index.rename(name=renamed) + + # With .set_names() + with pytest.raises(TypeError, match=message): + index.set_names(names=renamed) + + def test_constructor_unwraps_index(self, index_flat): + a = index_flat + # Passing dtype is necessary for Index([True, False], dtype=object) + # case. + b = type(a)(a, dtype=a.dtype) + tm.assert_equal(a._data, b._data) + + def test_to_flat_index(self, index_flat): + # 22866 + index = index_flat + + result = index.to_flat_index() + tm.assert_index_equal(result, index) + + def test_set_name_methods(self, index_flat): + # MultiIndex tested separately + index = index_flat + new_name = "This is the new name for this index" + + original_name = index.name + new_ind = index.set_names([new_name]) + assert new_ind.name == new_name + assert index.name == original_name + res = index.rename(new_name, inplace=True) + + # should return None + assert res is None + assert index.name == new_name + assert index.names == [new_name] + with pytest.raises(ValueError, match="Level must be None"): + index.set_names("a", level=0) + + # rename in place just leaves tuples and other containers alone + name = ("A", "B") + index.rename(name, inplace=True) + assert index.name == name + assert index.names == [name] + + @pytest.mark.xfail + def test_set_names_single_label_no_level(self, index_flat): + with pytest.raises(TypeError, match="list-like"): + # should still fail even if it would be the right length + index_flat.set_names("a") + + def test_copy_and_deepcopy(self, index_flat): + index = index_flat + + for func in (copy, deepcopy): + idx_copy = func(index) + assert idx_copy is not index + assert idx_copy.equals(index) + + new_copy = index.copy(deep=True, name="banana") + assert new_copy.name == "banana" + + @pytest.mark.filterwarnings(r"ignore:Dtype inference:FutureWarning") + def test_copy_name(self, index_flat): + # GH#12309: Check that the "name" argument + # passed at initialization is honored. + index = index_flat + + first = type(index)(index, copy=True, name="mario") + second = type(first)(first, copy=False) + + # Even though "copy=False", we want a new object. + assert first is not second + tm.assert_index_equal(first, second) + + # Not using tm.assert_index_equal() since names differ. + assert index.equals(first) + + assert first.name == "mario" + assert second.name == "mario" + + # TODO: belongs in series arithmetic tests? + s1 = pd.Series(2, index=first) + s2 = pd.Series(3, index=second[:-1]) + # See GH#13365 + s3 = s1 * s2 + assert s3.index.name == "mario" + + def test_copy_name2(self, index_flat): + # GH#35592 + index = index_flat + + assert index.copy(name="mario").name == "mario" + + with pytest.raises(ValueError, match="Length of new names must be 1, got 2"): + index.copy(name=["mario", "luigi"]) + + msg = f"{type(index).__name__}.name must be a hashable type" + with pytest.raises(TypeError, match=msg): + index.copy(name=[["mario"]]) + + def test_unique_level(self, index_flat): + # don't test a MultiIndex here (as its tested separated) + index = index_flat + + # GH 17896 + expected = index.drop_duplicates() + for level in [0, index.name, None]: + result = index.unique(level=level) + tm.assert_index_equal(result, expected) + + msg = "Too many levels: Index has only 1 level, not 4" + with pytest.raises(IndexError, match=msg): + index.unique(level=3) + + msg = ( + rf"Requested level \(wrong\) does not match index name " + rf"\({re.escape(index.name.__repr__())}\)" + ) + with pytest.raises(KeyError, match=msg): + index.unique(level="wrong") + + def test_unique(self, index_flat): + # MultiIndex tested separately + index = index_flat + if not len(index): + pytest.skip("Skip check for empty Index and MultiIndex") + + idx = index[[0] * 5] + idx_unique = index[[0]] + + # We test against `idx_unique`, so first we make sure it's unique + # and doesn't contain nans. + assert idx_unique.is_unique is True + try: + assert idx_unique.hasnans is False + except NotImplementedError: + pass + + result = idx.unique() + tm.assert_index_equal(result, idx_unique) + + # nans: + if not index._can_hold_na: + pytest.skip("Skip na-check if index cannot hold na") + + vals = index._values[[0] * 5] + vals[0] = np.nan + + vals_unique = vals[:2] + idx_nan = index._shallow_copy(vals) + idx_unique_nan = index._shallow_copy(vals_unique) + assert idx_unique_nan.is_unique is True + + assert idx_nan.dtype == index.dtype + assert idx_unique_nan.dtype == index.dtype + + expected = idx_unique_nan + for pos, i in enumerate([idx_nan, idx_unique_nan]): + result = i.unique() + tm.assert_index_equal(result, expected) + + @pytest.mark.filterwarnings("ignore:Period with BDay freq:FutureWarning") + @pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") + def test_searchsorted_monotonic(self, index_flat, request): + # GH17271 + index = index_flat + # not implemented for tuple searches in MultiIndex + # or Intervals searches in IntervalIndex + if isinstance(index, pd.IntervalIndex): + mark = pytest.mark.xfail( + reason="IntervalIndex.searchsorted does not support Interval arg", + raises=NotImplementedError, + ) + request.applymarker(mark) + + # nothing to test if the index is empty + if index.empty: + pytest.skip("Skip check for empty Index") + value = index[0] + + # determine the expected results (handle dupes for 'right') + expected_left, expected_right = 0, (index == value).argmin() + if expected_right == 0: + # all values are the same, expected_right should be length + expected_right = len(index) + + # test _searchsorted_monotonic in all cases + # test searchsorted only for increasing + if index.is_monotonic_increasing: + ssm_left = index._searchsorted_monotonic(value, side="left") + assert expected_left == ssm_left + + ssm_right = index._searchsorted_monotonic(value, side="right") + assert expected_right == ssm_right + + ss_left = index.searchsorted(value, side="left") + assert expected_left == ss_left + + ss_right = index.searchsorted(value, side="right") + assert expected_right == ss_right + + elif index.is_monotonic_decreasing: + ssm_left = index._searchsorted_monotonic(value, side="left") + assert expected_left == ssm_left + + ssm_right = index._searchsorted_monotonic(value, side="right") + assert expected_right == ssm_right + else: + # non-monotonic should raise. + msg = "index must be monotonic increasing or decreasing" + with pytest.raises(ValueError, match=msg): + index._searchsorted_monotonic(value, side="left") + + @pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") + def test_drop_duplicates(self, index_flat, keep): + # MultiIndex is tested separately + index = index_flat + if isinstance(index, RangeIndex): + pytest.skip( + "RangeIndex is tested in test_drop_duplicates_no_duplicates " + "as it cannot hold duplicates" + ) + if len(index) == 0: + pytest.skip( + "empty index is tested in test_drop_duplicates_no_duplicates " + "as it cannot hold duplicates" + ) + + # make unique index + holder = type(index) + unique_values = list(set(index)) + dtype = index.dtype if is_numeric_dtype(index) else None + unique_idx = holder(unique_values, dtype=dtype) + + # make duplicated index + n = len(unique_idx) + duplicated_selection = np.random.default_rng(2).choice(n, int(n * 1.5)) + idx = holder(unique_idx.values[duplicated_selection]) + + # Series.duplicated is tested separately + expected_duplicated = ( + pd.Series(duplicated_selection).duplicated(keep=keep).values + ) + tm.assert_numpy_array_equal(idx.duplicated(keep=keep), expected_duplicated) + + # Series.drop_duplicates is tested separately + expected_dropped = holder(pd.Series(idx).drop_duplicates(keep=keep)) + tm.assert_index_equal(idx.drop_duplicates(keep=keep), expected_dropped) + + @pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") + def test_drop_duplicates_no_duplicates(self, index_flat): + # MultiIndex is tested separately + index = index_flat + + # make unique index + if isinstance(index, RangeIndex): + # RangeIndex cannot have duplicates + unique_idx = index + else: + holder = type(index) + unique_values = list(set(index)) + dtype = index.dtype if is_numeric_dtype(index) else None + unique_idx = holder(unique_values, dtype=dtype) + + # check on unique index + expected_duplicated = np.array([False] * len(unique_idx), dtype="bool") + tm.assert_numpy_array_equal(unique_idx.duplicated(), expected_duplicated) + result_dropped = unique_idx.drop_duplicates() + tm.assert_index_equal(result_dropped, unique_idx) + # validate shallow copy + assert result_dropped is not unique_idx + + def test_drop_duplicates_inplace(self, index): + msg = r"drop_duplicates\(\) got an unexpected keyword argument" + with pytest.raises(TypeError, match=msg): + index.drop_duplicates(inplace=True) + + @pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") + def test_has_duplicates(self, index_flat): + # MultiIndex tested separately in: + # tests/indexes/multi/test_unique_and_duplicates. + index = index_flat + holder = type(index) + if not len(index) or isinstance(index, RangeIndex): + # MultiIndex tested separately in: + # tests/indexes/multi/test_unique_and_duplicates. + # RangeIndex is unique by definition. + pytest.skip("Skip check for empty Index, MultiIndex, and RangeIndex") + + idx = holder([index[0]] * 5) + assert idx.is_unique is False + assert idx.has_duplicates is True + + @pytest.mark.parametrize( + "dtype", + ["int64", "uint64", "float64", "category", "datetime64[ns]", "timedelta64[ns]"], + ) + def test_astype_preserves_name(self, index, dtype): + # https://github.com/pandas-dev/pandas/issues/32013 + if isinstance(index, MultiIndex): + index.names = ["idx" + str(i) for i in range(index.nlevels)] + else: + index.name = "idx" + + warn = None + if index.dtype.kind == "c" and dtype in ["float64", "int64", "uint64"]: + # imaginary components discarded + if np_version_gte1p25: + warn = np.exceptions.ComplexWarning + else: + warn = np.ComplexWarning + + is_pyarrow_str = str(index.dtype) == "string[pyarrow]" and dtype == "category" + try: + # Some of these conversions cannot succeed so we use a try / except + with tm.assert_produces_warning( + warn, + raise_on_extra_warnings=is_pyarrow_str, + check_stacklevel=False, + ): + result = index.astype(dtype) + except (ValueError, TypeError, NotImplementedError, SystemError): + return + + if isinstance(index, MultiIndex): + assert result.names == index.names + else: + assert result.name == index.name + + def test_hasnans_isnans(self, index_flat): + # GH#11343, added tests for hasnans / isnans + index = index_flat + + # cases in indices doesn't include NaN + idx = index.copy(deep=True) + expected = np.array([False] * len(idx), dtype=bool) + tm.assert_numpy_array_equal(idx._isnan, expected) + assert idx.hasnans is False + + idx = index.copy(deep=True) + values = idx._values + + if len(index) == 0: + return + elif is_integer_dtype(index.dtype): + return + elif index.dtype == bool: + # values[1] = np.nan below casts to True! + return + + values[1] = np.nan + + idx = type(index)(values) + + expected = np.array([False] * len(idx), dtype=bool) + expected[1] = True + tm.assert_numpy_array_equal(idx._isnan, expected) + assert idx.hasnans is True + + +@pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") +@pytest.mark.parametrize("na_position", [None, "middle"]) +def test_sort_values_invalid_na_position(index_with_missing, na_position): + with pytest.raises(ValueError, match=f"invalid na_position: {na_position}"): + index_with_missing.sort_values(na_position=na_position) + + +@pytest.mark.fails_arm_wheels +@pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") +@pytest.mark.parametrize("na_position", ["first", "last"]) +def test_sort_values_with_missing(index_with_missing, na_position, request): + # GH 35584. Test that sort_values works with missing values, + # sort non-missing and place missing according to na_position + + if isinstance(index_with_missing, CategoricalIndex): + request.applymarker( + pytest.mark.xfail( + reason="missing value sorting order not well-defined", strict=False + ) + ) + + missing_count = np.sum(index_with_missing.isna()) + not_na_vals = index_with_missing[index_with_missing.notna()].values + sorted_values = np.sort(not_na_vals) + if na_position == "first": + sorted_values = np.concatenate([[None] * missing_count, sorted_values]) + else: + sorted_values = np.concatenate([sorted_values, [None] * missing_count]) + + # Explicitly pass dtype needed for Index backed by EA e.g. IntegerArray + expected = type(index_with_missing)(sorted_values, dtype=index_with_missing.dtype) + + result = index_with_missing.sort_values(na_position=na_position) + tm.assert_index_equal(result, expected) + + +def test_ndarray_compat_properties(index): + if isinstance(index, PeriodIndex) and not IS64: + pytest.skip("Overflow") + idx = index + assert idx.T.equals(idx) + assert idx.transpose().equals(idx) + + values = idx.values + + assert idx.shape == values.shape + assert idx.ndim == values.ndim + assert idx.size == values.size + + if not isinstance(index, (RangeIndex, MultiIndex)): + # These two are not backed by an ndarray + assert idx.nbytes == values.nbytes + + # test for validity + idx.nbytes + idx.values.nbytes + + +def test_compare_read_only_array(): + # GH#57130 + arr = np.array([], dtype=object) + arr.flags.writeable = False + idx = pd.Index(arr) + result = idx > 69 + assert result.dtype == bool diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_datetimelike.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_datetimelike.py new file mode 100644 index 0000000000000000000000000000000000000000..21a686e8bc05b09729c6fe54e67c96405ee36bca --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_datetimelike.py @@ -0,0 +1,171 @@ +""" generic datetimelike tests """ + +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm + + +class TestDatetimeLike: + @pytest.fixture( + params=[ + pd.period_range("20130101", periods=5, freq="D"), + pd.TimedeltaIndex( + [ + "0 days 01:00:00", + "1 days 01:00:00", + "2 days 01:00:00", + "3 days 01:00:00", + "4 days 01:00:00", + ], + dtype="timedelta64[ns]", + freq="D", + ), + pd.DatetimeIndex( + ["2013-01-01", "2013-01-02", "2013-01-03", "2013-01-04", "2013-01-05"], + dtype="datetime64[ns]", + freq="D", + ), + ] + ) + def simple_index(self, request): + return request.param + + def test_isin(self, simple_index): + index = simple_index[:4] + result = index.isin(index) + assert result.all() + + result = index.isin(list(index)) + assert result.all() + + result = index.isin([index[2], 5]) + expected = np.array([False, False, True, False]) + tm.assert_numpy_array_equal(result, expected) + + def test_argsort_matches_array(self, simple_index): + idx = simple_index + idx = idx.insert(1, pd.NaT) + + result = idx.argsort() + expected = idx._data.argsort() + tm.assert_numpy_array_equal(result, expected) + + def test_can_hold_identifiers(self, simple_index): + idx = simple_index + key = idx[0] + assert idx._can_hold_identifiers_and_holds_name(key) is False + + def test_shift_identity(self, simple_index): + idx = simple_index + tm.assert_index_equal(idx, idx.shift(0)) + + def test_shift_empty(self, simple_index): + # GH#14811 + idx = simple_index[:0] + tm.assert_index_equal(idx, idx.shift(1)) + + def test_str(self, simple_index): + # test the string repr + idx = simple_index.copy() + idx.name = "foo" + assert f"length={len(idx)}" not in str(idx) + assert "'foo'" in str(idx) + assert type(idx).__name__ in str(idx) + + if hasattr(idx, "tz"): + if idx.tz is not None: + assert idx.tz in str(idx) + if isinstance(idx, pd.PeriodIndex): + assert f"dtype='period[{idx.freqstr}]'" in str(idx) + else: + assert f"freq='{idx.freqstr}'" in str(idx) + + def test_view(self, simple_index): + idx = simple_index + + idx_view = idx.view("i8") + result = type(simple_index)(idx) + tm.assert_index_equal(result, idx) + + msg = "Passing a type in .*Index.view is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + idx_view = idx.view(type(simple_index)) + result = type(simple_index)(idx) + tm.assert_index_equal(result, idx_view) + + def test_map_callable(self, simple_index): + index = simple_index + expected = index + index.freq + result = index.map(lambda x: x + index.freq) + tm.assert_index_equal(result, expected) + + # map to NaT + result = index.map(lambda x: pd.NaT if x == index[0] else x) + expected = pd.Index([pd.NaT] + index[1:].tolist()) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "mapper", + [ + lambda values, index: {i: e for e, i in zip(values, index)}, + lambda values, index: pd.Series(values, index, dtype=object), + ], + ) + @pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") + def test_map_dictlike(self, mapper, simple_index): + index = simple_index + expected = index + index.freq + + # don't compare the freqs + if isinstance(expected, (pd.DatetimeIndex, pd.TimedeltaIndex)): + expected = expected._with_freq(None) + + result = index.map(mapper(expected, index)) + tm.assert_index_equal(result, expected) + + expected = pd.Index([pd.NaT] + index[1:].tolist()) + result = index.map(mapper(expected, index)) + tm.assert_index_equal(result, expected) + + # empty map; these map to np.nan because we cannot know + # to re-infer things + expected = pd.Index([np.nan] * len(index)) + result = index.map(mapper([], [])) + tm.assert_index_equal(result, expected) + + def test_getitem_preserves_freq(self, simple_index): + index = simple_index + assert index.freq is not None + + result = index[:] + assert result.freq == index.freq + + def test_where_cast_str(self, simple_index): + index = simple_index + + mask = np.ones(len(index), dtype=bool) + mask[-1] = False + + result = index.where(mask, str(index[0])) + expected = index.where(mask, index[0]) + tm.assert_index_equal(result, expected) + + result = index.where(mask, [str(index[0])]) + tm.assert_index_equal(result, expected) + + expected = index.astype(object).where(mask, "foo") + result = index.where(mask, "foo") + tm.assert_index_equal(result, expected) + + result = index.where(mask, ["foo"]) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("unit", ["ns", "us", "ms", "s"]) + def test_diff(self, unit): + # GH 55080 + dti = pd.to_datetime([10, 20, 30], unit=unit).as_unit(unit) + result = dti.diff(1) + expected = pd.to_timedelta([pd.NaT, 10, 10], unit=unit).as_unit(unit) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_engines.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_engines.py new file mode 100644 index 0000000000000000000000000000000000000000..468c2240c8192098a6ff75a5a2d0210c8108a176 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_engines.py @@ -0,0 +1,192 @@ +import re + +import numpy as np +import pytest + +from pandas._libs import index as libindex + +import pandas as pd + + +@pytest.fixture( + params=[ + (libindex.Int64Engine, np.int64), + (libindex.Int32Engine, np.int32), + (libindex.Int16Engine, np.int16), + (libindex.Int8Engine, np.int8), + (libindex.UInt64Engine, np.uint64), + (libindex.UInt32Engine, np.uint32), + (libindex.UInt16Engine, np.uint16), + (libindex.UInt8Engine, np.uint8), + (libindex.Float64Engine, np.float64), + (libindex.Float32Engine, np.float32), + ], + ids=lambda x: x[0].__name__, +) +def numeric_indexing_engine_type_and_dtype(request): + return request.param + + +class TestDatetimeEngine: + @pytest.mark.parametrize( + "scalar", + [ + pd.Timedelta(pd.Timestamp("2016-01-01").asm8.view("m8[ns]")), + pd.Timestamp("2016-01-01")._value, + pd.Timestamp("2016-01-01").to_pydatetime(), + pd.Timestamp("2016-01-01").to_datetime64(), + ], + ) + def test_not_contains_requires_timestamp(self, scalar): + dti1 = pd.date_range("2016-01-01", periods=3) + dti2 = dti1.insert(1, pd.NaT) # non-monotonic + dti3 = dti1.insert(3, dti1[0]) # non-unique + dti4 = pd.date_range("2016-01-01", freq="ns", periods=2_000_000) + dti5 = dti4.insert(0, dti4[0]) # over size threshold, not unique + + msg = "|".join([re.escape(str(scalar)), re.escape(repr(scalar))]) + for dti in [dti1, dti2, dti3, dti4, dti5]: + with pytest.raises(TypeError, match=msg): + scalar in dti._engine + + with pytest.raises(KeyError, match=msg): + dti._engine.get_loc(scalar) + + +class TestTimedeltaEngine: + @pytest.mark.parametrize( + "scalar", + [ + pd.Timestamp(pd.Timedelta(days=42).asm8.view("datetime64[ns]")), + pd.Timedelta(days=42)._value, + pd.Timedelta(days=42).to_pytimedelta(), + pd.Timedelta(days=42).to_timedelta64(), + ], + ) + def test_not_contains_requires_timedelta(self, scalar): + tdi1 = pd.timedelta_range("42 days", freq="9h", periods=1234) + tdi2 = tdi1.insert(1, pd.NaT) # non-monotonic + tdi3 = tdi1.insert(3, tdi1[0]) # non-unique + tdi4 = pd.timedelta_range("42 days", freq="ns", periods=2_000_000) + tdi5 = tdi4.insert(0, tdi4[0]) # over size threshold, not unique + + msg = "|".join([re.escape(str(scalar)), re.escape(repr(scalar))]) + for tdi in [tdi1, tdi2, tdi3, tdi4, tdi5]: + with pytest.raises(TypeError, match=msg): + scalar in tdi._engine + + with pytest.raises(KeyError, match=msg): + tdi._engine.get_loc(scalar) + + +class TestNumericEngine: + def test_is_monotonic(self, numeric_indexing_engine_type_and_dtype): + engine_type, dtype = numeric_indexing_engine_type_and_dtype + num = 1000 + arr = np.array([1] * num + [2] * num + [3] * num, dtype=dtype) + + # monotonic increasing + engine = engine_type(arr) + assert engine.is_monotonic_increasing is True + assert engine.is_monotonic_decreasing is False + + # monotonic decreasing + engine = engine_type(arr[::-1]) + assert engine.is_monotonic_increasing is False + assert engine.is_monotonic_decreasing is True + + # neither monotonic increasing or decreasing + arr = np.array([1] * num + [2] * num + [1] * num, dtype=dtype) + engine = engine_type(arr[::-1]) + assert engine.is_monotonic_increasing is False + assert engine.is_monotonic_decreasing is False + + def test_is_unique(self, numeric_indexing_engine_type_and_dtype): + engine_type, dtype = numeric_indexing_engine_type_and_dtype + + # unique + arr = np.array([1, 3, 2], dtype=dtype) + engine = engine_type(arr) + assert engine.is_unique is True + + # not unique + arr = np.array([1, 2, 1], dtype=dtype) + engine = engine_type(arr) + assert engine.is_unique is False + + def test_get_loc(self, numeric_indexing_engine_type_and_dtype): + engine_type, dtype = numeric_indexing_engine_type_and_dtype + + # unique + arr = np.array([1, 2, 3], dtype=dtype) + engine = engine_type(arr) + assert engine.get_loc(2) == 1 + + # monotonic + num = 1000 + arr = np.array([1] * num + [2] * num + [3] * num, dtype=dtype) + engine = engine_type(arr) + assert engine.get_loc(2) == slice(1000, 2000) + + # not monotonic + arr = np.array([1, 2, 3] * num, dtype=dtype) + engine = engine_type(arr) + expected = np.array([False, True, False] * num, dtype=bool) + result = engine.get_loc(2) + assert (result == expected).all() + + +class TestObjectEngine: + engine_type = libindex.ObjectEngine + dtype = np.object_ + values = list("abc") + + def test_is_monotonic(self): + num = 1000 + arr = np.array(["a"] * num + ["a"] * num + ["c"] * num, dtype=self.dtype) + + # monotonic increasing + engine = self.engine_type(arr) + assert engine.is_monotonic_increasing is True + assert engine.is_monotonic_decreasing is False + + # monotonic decreasing + engine = self.engine_type(arr[::-1]) + assert engine.is_monotonic_increasing is False + assert engine.is_monotonic_decreasing is True + + # neither monotonic increasing or decreasing + arr = np.array(["a"] * num + ["b"] * num + ["a"] * num, dtype=self.dtype) + engine = self.engine_type(arr[::-1]) + assert engine.is_monotonic_increasing is False + assert engine.is_monotonic_decreasing is False + + def test_is_unique(self): + # unique + arr = np.array(self.values, dtype=self.dtype) + engine = self.engine_type(arr) + assert engine.is_unique is True + + # not unique + arr = np.array(["a", "b", "a"], dtype=self.dtype) + engine = self.engine_type(arr) + assert engine.is_unique is False + + def test_get_loc(self): + # unique + arr = np.array(self.values, dtype=self.dtype) + engine = self.engine_type(arr) + assert engine.get_loc("b") == 1 + + # monotonic + num = 1000 + arr = np.array(["a"] * num + ["b"] * num + ["c"] * num, dtype=self.dtype) + engine = self.engine_type(arr) + assert engine.get_loc("b") == slice(1000, 2000) + + # not monotonic + arr = np.array(self.values * num, dtype=self.dtype) + engine = self.engine_type(arr) + expected = np.array([False, True, False] * num, dtype=bool) + result = engine.get_loc("b") + assert (result == expected).all() diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_frozen.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_frozen.py new file mode 100644 index 0000000000000000000000000000000000000000..ace66b5b06a51291d2cf229fdc446d070054836a --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_frozen.py @@ -0,0 +1,113 @@ +import re + +import pytest + +from pandas.core.indexes.frozen import FrozenList + + +@pytest.fixture +def lst(): + return [1, 2, 3, 4, 5] + + +@pytest.fixture +def container(lst): + return FrozenList(lst) + + +@pytest.fixture +def unicode_container(): + return FrozenList(["\u05d0", "\u05d1", "c"]) + + +class TestFrozenList: + def check_mutable_error(self, *args, **kwargs): + # Pass whatever function you normally would to pytest.raises + # (after the Exception kind). + mutable_regex = re.compile("does not support mutable operations") + msg = "'(_s)?re.(SRE_)?Pattern' object is not callable" + with pytest.raises(TypeError, match=msg): + mutable_regex(*args, **kwargs) + + def test_no_mutable_funcs(self, container): + def setitem(): + container[0] = 5 + + self.check_mutable_error(setitem) + + def setslice(): + container[1:2] = 3 + + self.check_mutable_error(setslice) + + def delitem(): + del container[0] + + self.check_mutable_error(delitem) + + def delslice(): + del container[0:3] + + self.check_mutable_error(delslice) + + mutable_methods = ("extend", "pop", "remove", "insert") + + for meth in mutable_methods: + self.check_mutable_error(getattr(container, meth)) + + def test_slicing_maintains_type(self, container, lst): + result = container[1:2] + expected = lst[1:2] + self.check_result(result, expected) + + def check_result(self, result, expected): + assert isinstance(result, FrozenList) + assert result == expected + + def test_string_methods_dont_fail(self, container): + repr(container) + str(container) + bytes(container) + + def test_tricky_container(self, unicode_container): + repr(unicode_container) + str(unicode_container) + + def test_add(self, container, lst): + result = container + (1, 2, 3) + expected = FrozenList(lst + [1, 2, 3]) + self.check_result(result, expected) + + result = (1, 2, 3) + container + expected = FrozenList([1, 2, 3] + lst) + self.check_result(result, expected) + + def test_iadd(self, container, lst): + q = r = container + + q += [5] + self.check_result(q, lst + [5]) + + # Other shouldn't be mutated. + self.check_result(r, lst) + + def test_union(self, container, lst): + result = container.union((1, 2, 3)) + expected = FrozenList(lst + [1, 2, 3]) + self.check_result(result, expected) + + def test_difference(self, container): + result = container.difference([2]) + expected = FrozenList([1, 3, 4, 5]) + self.check_result(result, expected) + + def test_difference_dupe(self): + result = FrozenList([1, 2, 3, 2]).difference([2]) + expected = FrozenList([1, 3]) + self.check_result(result, expected) + + def test_tricky_container_to_bytes_raises(self, unicode_container): + # GH 26447 + msg = "^'str' object cannot be interpreted as an integer$" + with pytest.raises(TypeError, match=msg): + bytes(unicode_container) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_index_new.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_index_new.py new file mode 100644 index 0000000000000000000000000000000000000000..6042e5b9cc6793018ccf26f37aec236dfa353393 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_index_new.py @@ -0,0 +1,432 @@ +""" +Tests for the Index constructor conducting inference. +""" +from datetime import ( + datetime, + timedelta, + timezone, +) +from decimal import Decimal + +import numpy as np +import pytest + +from pandas._libs.tslibs.timezones import maybe_get_tz + +from pandas import ( + NA, + Categorical, + CategoricalIndex, + DatetimeIndex, + Index, + IntervalIndex, + MultiIndex, + NaT, + PeriodIndex, + Series, + TimedeltaIndex, + Timestamp, + array, + date_range, + period_range, + timedelta_range, +) +import pandas._testing as tm + + +class TestIndexConstructorInference: + def test_object_all_bools(self): + # GH#49594 match Series behavior on ndarray[object] of all bools + arr = np.array([True, False], dtype=object) + res = Index(arr) + assert res.dtype == object + + # since the point is matching Series behavior, let's double check + assert Series(arr).dtype == object + + def test_object_all_complex(self): + # GH#49594 match Series behavior on ndarray[object] of all complex + arr = np.array([complex(1), complex(2)], dtype=object) + res = Index(arr) + assert res.dtype == object + + # since the point is matching Series behavior, let's double check + assert Series(arr).dtype == object + + @pytest.mark.parametrize("val", [NaT, None, np.nan, float("nan")]) + def test_infer_nat(self, val): + # GH#49340 all NaT/None/nan and at least 1 NaT -> datetime64[ns], + # matching Series behavior + values = [NaT, val] + + idx = Index(values) + assert idx.dtype == "datetime64[ns]" and idx.isna().all() + + idx = Index(values[::-1]) + assert idx.dtype == "datetime64[ns]" and idx.isna().all() + + idx = Index(np.array(values, dtype=object)) + assert idx.dtype == "datetime64[ns]" and idx.isna().all() + + idx = Index(np.array(values, dtype=object)[::-1]) + assert idx.dtype == "datetime64[ns]" and idx.isna().all() + + @pytest.mark.parametrize("na_value", [None, np.nan]) + @pytest.mark.parametrize("vtype", [list, tuple, iter]) + def test_construction_list_tuples_nan(self, na_value, vtype): + # GH#18505 : valid tuples containing NaN + values = [(1, "two"), (3.0, na_value)] + result = Index(vtype(values)) + expected = MultiIndex.from_tuples(values) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "dtype", + [int, "int64", "int32", "int16", "int8", "uint64", "uint32", "uint16", "uint8"], + ) + def test_constructor_int_dtype_float(self, dtype): + # GH#18400 + expected = Index([0, 1, 2, 3], dtype=dtype) + result = Index([0.0, 1.0, 2.0, 3.0], dtype=dtype) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("cast_index", [True, False]) + @pytest.mark.parametrize( + "vals", [[True, False, True], np.array([True, False, True], dtype=bool)] + ) + def test_constructor_dtypes_to_object(self, cast_index, vals): + if cast_index: + index = Index(vals, dtype=bool) + else: + index = Index(vals) + + assert type(index) is Index + assert index.dtype == bool + + def test_constructor_categorical_to_object(self): + # GH#32167 Categorical data and dtype=object should return object-dtype + ci = CategoricalIndex(range(5)) + result = Index(ci, dtype=object) + assert not isinstance(result, CategoricalIndex) + + def test_constructor_infer_periodindex(self): + xp = period_range("2012-1-1", freq="M", periods=3) + rs = Index(xp) + tm.assert_index_equal(rs, xp) + assert isinstance(rs, PeriodIndex) + + def test_from_list_of_periods(self): + rng = period_range("1/1/2000", periods=20, freq="D") + periods = list(rng) + + result = Index(periods) + assert isinstance(result, PeriodIndex) + + @pytest.mark.parametrize("pos", [0, 1]) + @pytest.mark.parametrize( + "klass,dtype,ctor", + [ + (DatetimeIndex, "datetime64[ns]", np.datetime64("nat")), + (TimedeltaIndex, "timedelta64[ns]", np.timedelta64("nat")), + ], + ) + def test_constructor_infer_nat_dt_like( + self, pos, klass, dtype, ctor, nulls_fixture, request + ): + if isinstance(nulls_fixture, Decimal): + # We dont cast these to datetime64/timedelta64 + pytest.skip( + f"We don't cast {type(nulls_fixture).__name__} to " + "datetime64/timedelta64" + ) + + expected = klass([NaT, NaT]) + assert expected.dtype == dtype + data = [ctor] + data.insert(pos, nulls_fixture) + + warn = None + if nulls_fixture is NA: + expected = Index([NA, NaT]) + mark = pytest.mark.xfail(reason="Broken with np.NaT ctor; see GH 31884") + request.applymarker(mark) + # GH#35942 numpy will emit a DeprecationWarning within the + # assert_index_equal calls. Since we can't do anything + # about it until GH#31884 is fixed, we suppress that warning. + warn = DeprecationWarning + + result = Index(data) + + with tm.assert_produces_warning(warn): + tm.assert_index_equal(result, expected) + + result = Index(np.array(data, dtype=object)) + + with tm.assert_produces_warning(warn): + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("swap_objs", [True, False]) + def test_constructor_mixed_nat_objs_infers_object(self, swap_objs): + # mixed np.datetime64/timedelta64 nat results in object + data = [np.datetime64("nat"), np.timedelta64("nat")] + if swap_objs: + data = data[::-1] + + expected = Index(data, dtype=object) + tm.assert_index_equal(Index(data), expected) + tm.assert_index_equal(Index(np.array(data, dtype=object)), expected) + + @pytest.mark.parametrize("swap_objs", [True, False]) + def test_constructor_datetime_and_datetime64(self, swap_objs): + data = [Timestamp(2021, 6, 8, 9, 42), np.datetime64("now")] + if swap_objs: + data = data[::-1] + expected = DatetimeIndex(data) + + tm.assert_index_equal(Index(data), expected) + tm.assert_index_equal(Index(np.array(data, dtype=object)), expected) + + def test_constructor_datetimes_mixed_tzs(self): + # https://github.com/pandas-dev/pandas/pull/55793/files#r1383719998 + tz = maybe_get_tz("US/Central") + dt1 = datetime(2020, 1, 1, tzinfo=tz) + dt2 = datetime(2020, 1, 1, tzinfo=timezone.utc) + result = Index([dt1, dt2]) + expected = Index([dt1, dt2], dtype=object) + tm.assert_index_equal(result, expected) + + +class TestDtypeEnforced: + # check we don't silently ignore the dtype keyword + + def test_constructor_object_dtype_with_ea_data(self, any_numeric_ea_dtype): + # GH#45206 + arr = array([0], dtype=any_numeric_ea_dtype) + + idx = Index(arr, dtype=object) + assert idx.dtype == object + + @pytest.mark.parametrize("dtype", [object, "float64", "uint64", "category"]) + def test_constructor_range_values_mismatched_dtype(self, dtype): + rng = Index(range(5)) + + result = Index(rng, dtype=dtype) + assert result.dtype == dtype + + result = Index(range(5), dtype=dtype) + assert result.dtype == dtype + + @pytest.mark.parametrize("dtype", [object, "float64", "uint64", "category"]) + def test_constructor_categorical_values_mismatched_non_ea_dtype(self, dtype): + cat = Categorical([1, 2, 3]) + + result = Index(cat, dtype=dtype) + assert result.dtype == dtype + + def test_constructor_categorical_values_mismatched_dtype(self): + dti = date_range("2016-01-01", periods=3) + cat = Categorical(dti) + result = Index(cat, dti.dtype) + tm.assert_index_equal(result, dti) + + dti2 = dti.tz_localize("Asia/Tokyo") + cat2 = Categorical(dti2) + result = Index(cat2, dti2.dtype) + tm.assert_index_equal(result, dti2) + + ii = IntervalIndex.from_breaks(range(5)) + cat3 = Categorical(ii) + result = Index(cat3, dtype=ii.dtype) + tm.assert_index_equal(result, ii) + + def test_constructor_ea_values_mismatched_categorical_dtype(self): + dti = date_range("2016-01-01", periods=3) + result = Index(dti, dtype="category") + expected = CategoricalIndex(dti) + tm.assert_index_equal(result, expected) + + dti2 = date_range("2016-01-01", periods=3, tz="US/Pacific") + result = Index(dti2, dtype="category") + expected = CategoricalIndex(dti2) + tm.assert_index_equal(result, expected) + + def test_constructor_period_values_mismatched_dtype(self): + pi = period_range("2016-01-01", periods=3, freq="D") + result = Index(pi, dtype="category") + expected = CategoricalIndex(pi) + tm.assert_index_equal(result, expected) + + def test_constructor_timedelta64_values_mismatched_dtype(self): + # check we don't silently ignore the dtype keyword + tdi = timedelta_range("4 Days", periods=5) + result = Index(tdi, dtype="category") + expected = CategoricalIndex(tdi) + tm.assert_index_equal(result, expected) + + def test_constructor_interval_values_mismatched_dtype(self): + dti = date_range("2016-01-01", periods=3) + ii = IntervalIndex.from_breaks(dti) + result = Index(ii, dtype="category") + expected = CategoricalIndex(ii) + tm.assert_index_equal(result, expected) + + def test_constructor_datetime64_values_mismatched_period_dtype(self): + dti = date_range("2016-01-01", periods=3) + result = Index(dti, dtype="Period[D]") + expected = dti.to_period("D") + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("dtype", ["int64", "uint64"]) + def test_constructor_int_dtype_nan_raises(self, dtype): + # see GH#15187 + data = [np.nan] + msg = "cannot convert" + with pytest.raises(ValueError, match=msg): + Index(data, dtype=dtype) + + @pytest.mark.parametrize( + "vals", + [ + [1, 2, 3], + np.array([1, 2, 3]), + np.array([1, 2, 3], dtype=int), + # below should coerce + [1.0, 2.0, 3.0], + np.array([1.0, 2.0, 3.0], dtype=float), + ], + ) + def test_constructor_dtypes_to_int(self, vals, any_int_numpy_dtype): + dtype = any_int_numpy_dtype + index = Index(vals, dtype=dtype) + assert index.dtype == dtype + + @pytest.mark.parametrize( + "vals", + [ + [1, 2, 3], + [1.0, 2.0, 3.0], + np.array([1.0, 2.0, 3.0]), + np.array([1, 2, 3], dtype=int), + np.array([1.0, 2.0, 3.0], dtype=float), + ], + ) + def test_constructor_dtypes_to_float(self, vals, float_numpy_dtype): + dtype = float_numpy_dtype + index = Index(vals, dtype=dtype) + assert index.dtype == dtype + + @pytest.mark.parametrize( + "vals", + [ + [1, 2, 3], + np.array([1, 2, 3], dtype=int), + np.array(["2011-01-01", "2011-01-02"], dtype="datetime64[ns]"), + [datetime(2011, 1, 1), datetime(2011, 1, 2)], + ], + ) + def test_constructor_dtypes_to_categorical(self, vals): + index = Index(vals, dtype="category") + assert isinstance(index, CategoricalIndex) + + @pytest.mark.parametrize("cast_index", [True, False]) + @pytest.mark.parametrize( + "vals", + [ + Index(np.array([np.datetime64("2011-01-01"), np.datetime64("2011-01-02")])), + Index([datetime(2011, 1, 1), datetime(2011, 1, 2)]), + ], + ) + def test_constructor_dtypes_to_datetime(self, cast_index, vals): + if cast_index: + index = Index(vals, dtype=object) + assert isinstance(index, Index) + assert index.dtype == object + else: + index = Index(vals) + assert isinstance(index, DatetimeIndex) + + @pytest.mark.parametrize("cast_index", [True, False]) + @pytest.mark.parametrize( + "vals", + [ + np.array([np.timedelta64(1, "D"), np.timedelta64(1, "D")]), + [timedelta(1), timedelta(1)], + ], + ) + def test_constructor_dtypes_to_timedelta(self, cast_index, vals): + if cast_index: + index = Index(vals, dtype=object) + assert isinstance(index, Index) + assert index.dtype == object + else: + index = Index(vals) + assert isinstance(index, TimedeltaIndex) + + def test_pass_timedeltaindex_to_index(self): + rng = timedelta_range("1 days", "10 days") + idx = Index(rng, dtype=object) + + expected = Index(rng.to_pytimedelta(), dtype=object) + + tm.assert_numpy_array_equal(idx.values, expected.values) + + def test_pass_datetimeindex_to_index(self): + # GH#1396 + rng = date_range("1/1/2000", "3/1/2000") + idx = Index(rng, dtype=object) + + expected = Index(rng.to_pydatetime(), dtype=object) + + tm.assert_numpy_array_equal(idx.values, expected.values) + + +class TestIndexConstructorUnwrapping: + # Test passing different arraylike values to pd.Index + + @pytest.mark.parametrize("klass", [Index, DatetimeIndex]) + def test_constructor_from_series_dt64(self, klass): + stamps = [Timestamp("20110101"), Timestamp("20120101"), Timestamp("20130101")] + expected = DatetimeIndex(stamps) + ser = Series(stamps) + result = klass(ser) + tm.assert_index_equal(result, expected) + + def test_constructor_no_pandas_array(self): + ser = Series([1, 2, 3]) + result = Index(ser.array) + expected = Index([1, 2, 3]) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "array", + [ + np.arange(5), + np.array(["a", "b", "c"]), + date_range("2000-01-01", periods=3).values, + ], + ) + def test_constructor_ndarray_like(self, array): + # GH#5460#issuecomment-44474502 + # it should be possible to convert any object that satisfies the numpy + # ndarray interface directly into an Index + class ArrayLike: + def __init__(self, array) -> None: + self.array = array + + def __array__(self, dtype=None, copy=None) -> np.ndarray: + return self.array + + expected = Index(array) + result = Index(ArrayLike(array)) + tm.assert_index_equal(result, expected) + + +class TestIndexConstructionErrors: + def test_constructor_overflow_int64(self): + # see GH#15832 + msg = ( + "The elements provided in the data cannot " + "all be casted to the dtype int64" + ) + with pytest.raises(OverflowError, match=msg): + Index([np.iinfo(np.uint64).max - 1], dtype="int64") diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_indexing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_indexing.py new file mode 100644 index 0000000000000000000000000000000000000000..262ec1eac6f4a9ff9adfc01675d83bd98bf96f1f --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_indexing.py @@ -0,0 +1,364 @@ +""" +test_indexing tests the following Index methods: + __getitem__ + get_loc + get_value + __contains__ + take + where + get_indexer + get_indexer_for + slice_locs + asof_locs + +The corresponding tests.indexes.[index_type].test_indexing files +contain tests for the corresponding methods specific to those Index subclasses. +""" +import numpy as np +import pytest + +from pandas.compat import PY314 +from pandas.errors import InvalidIndexError + +from pandas.core.dtypes.common import ( + is_float_dtype, + is_scalar, +) + +from pandas import ( + NA, + DatetimeIndex, + Index, + IntervalIndex, + MultiIndex, + NaT, + PeriodIndex, + TimedeltaIndex, +) +import pandas._testing as tm + + +class TestTake: + def test_take_invalid_kwargs(self, index): + indices = [1, 2] + + msg = r"take\(\) got an unexpected keyword argument 'foo'" + with pytest.raises(TypeError, match=msg): + index.take(indices, foo=2) + + msg = "the 'out' parameter is not supported" + with pytest.raises(ValueError, match=msg): + index.take(indices, out=indices) + + msg = "the 'mode' parameter is not supported" + with pytest.raises(ValueError, match=msg): + index.take(indices, mode="clip") + + def test_take(self, index): + indexer = [4, 3, 0, 2] + if len(index) < 5: + pytest.skip("Test doesn't make sense since not enough elements") + + result = index.take(indexer) + expected = index[indexer] + assert result.equals(expected) + + if not isinstance(index, (DatetimeIndex, PeriodIndex, TimedeltaIndex)): + # GH 10791 + msg = r"'(.*Index)' object has no attribute 'freq'" + with pytest.raises(AttributeError, match=msg): + index.freq + + def test_take_indexer_type(self): + # GH#42875 + integer_index = Index([0, 1, 2, 3]) + scalar_index = 1 + msg = "Expected indices to be array-like" + with pytest.raises(TypeError, match=msg): + integer_index.take(scalar_index) + + def test_take_minus1_without_fill(self, index): + # -1 does not get treated as NA unless allow_fill=True is passed + if len(index) == 0: + # Test is not applicable + pytest.skip("Test doesn't make sense for empty index") + + result = index.take([0, 0, -1]) + + expected = index.take([0, 0, len(index) - 1]) + tm.assert_index_equal(result, expected) + + +class TestContains: + @pytest.mark.parametrize( + "index,val", + [ + (Index([0, 1, 2]), 2), + (Index([0, 1, "2"]), "2"), + (Index([0, 1, 2, np.inf, 4]), 4), + (Index([0, 1, 2, np.nan, 4]), 4), + (Index([0, 1, 2, np.inf]), np.inf), + (Index([0, 1, 2, np.nan]), np.nan), + ], + ) + def test_index_contains(self, index, val): + assert val in index + + @pytest.mark.parametrize( + "index,val", + [ + (Index([0, 1, 2]), "2"), + (Index([0, 1, "2"]), 2), + (Index([0, 1, 2, np.inf]), 4), + (Index([0, 1, 2, np.nan]), 4), + (Index([0, 1, 2, np.inf]), np.nan), + (Index([0, 1, 2, np.nan]), np.inf), + # Checking if np.inf in int64 Index should not cause an OverflowError + # Related to GH 16957 + (Index([0, 1, 2], dtype=np.int64), np.inf), + (Index([0, 1, 2], dtype=np.int64), np.nan), + (Index([0, 1, 2], dtype=np.uint64), np.inf), + (Index([0, 1, 2], dtype=np.uint64), np.nan), + ], + ) + def test_index_not_contains(self, index, val): + assert val not in index + + @pytest.mark.parametrize( + "index,val", [(Index([0, 1, "2"]), 0), (Index([0, 1, "2"]), "2")] + ) + def test_mixed_index_contains(self, index, val): + # GH#19860 + assert val in index + + @pytest.mark.parametrize( + "index,val", [(Index([0, 1, "2"]), "1"), (Index([0, 1, "2"]), 2)] + ) + def test_mixed_index_not_contains(self, index, val): + # GH#19860 + assert val not in index + + def test_contains_with_float_index(self, any_real_numpy_dtype): + # GH#22085 + dtype = any_real_numpy_dtype + data = [0, 1, 2, 3] if not is_float_dtype(dtype) else [0.1, 1.1, 2.2, 3.3] + index = Index(data, dtype=dtype) + + if not is_float_dtype(index.dtype): + assert 1.1 not in index + assert 1.0 in index + assert 1 in index + else: + assert 1.1 in index + assert 1.0 not in index + assert 1 not in index + + def test_contains_requires_hashable_raises(self, index): + if isinstance(index, MultiIndex): + return # TODO: do we want this to raise? + + msg = "unhashable type: 'list'" + with pytest.raises(TypeError, match=msg): + [] in index + + if PY314: + container_or_iterable = "a container or iterable" + else: + container_or_iterable = "iterable" + + msg = "|".join( + [ + r"unhashable type: 'dict'", + r"must be real number, not dict", + r"an integer is required", + r"\{\}", + r"pandas\._libs\.interval\.IntervalTree' is not " + f"{container_or_iterable}", + ] + ) + with pytest.raises(TypeError, match=msg): + {} in index._engine + + +class TestGetLoc: + def test_get_loc_non_hashable(self, index): + with pytest.raises(InvalidIndexError, match="[0, 1]"): + index.get_loc([0, 1]) + + def test_get_loc_non_scalar_hashable(self, index): + # GH52877 + from enum import Enum + + class E(Enum): + X1 = "x1" + + assert not is_scalar(E.X1) + + exc = KeyError + msg = "" + if isinstance( + index, + ( + DatetimeIndex, + TimedeltaIndex, + PeriodIndex, + IntervalIndex, + ), + ): + # TODO: make these more consistent? + exc = InvalidIndexError + msg = "E.X1" + with pytest.raises(exc, match=msg): + index.get_loc(E.X1) + + def test_get_loc_generator(self, index): + exc = KeyError + if isinstance( + index, + ( + DatetimeIndex, + TimedeltaIndex, + PeriodIndex, + IntervalIndex, + MultiIndex, + ), + ): + # TODO: make these more consistent? + exc = InvalidIndexError + with pytest.raises(exc, match="generator object"): + # MultiIndex specifically checks for generator; others for scalar + index.get_loc(x for x in range(5)) + + def test_get_loc_masked_duplicated_na(self): + # GH#48411 + idx = Index([1, 2, NA, NA], dtype="Int64") + result = idx.get_loc(NA) + expected = np.array([False, False, True, True]) + tm.assert_numpy_array_equal(result, expected) + + +class TestGetIndexer: + def test_get_indexer_base(self, index): + if index._index_as_unique: + expected = np.arange(index.size, dtype=np.intp) + actual = index.get_indexer(index) + tm.assert_numpy_array_equal(expected, actual) + else: + msg = "Reindexing only valid with uniquely valued Index objects" + with pytest.raises(InvalidIndexError, match=msg): + index.get_indexer(index) + + with pytest.raises(ValueError, match="Invalid fill method"): + index.get_indexer(index, method="invalid") + + def test_get_indexer_consistency(self, index): + # See GH#16819 + + if index._index_as_unique: + indexer = index.get_indexer(index[0:2]) + assert isinstance(indexer, np.ndarray) + assert indexer.dtype == np.intp + else: + msg = "Reindexing only valid with uniquely valued Index objects" + with pytest.raises(InvalidIndexError, match=msg): + index.get_indexer(index[0:2]) + + indexer, _ = index.get_indexer_non_unique(index[0:2]) + assert isinstance(indexer, np.ndarray) + assert indexer.dtype == np.intp + + def test_get_indexer_masked_duplicated_na(self): + # GH#48411 + idx = Index([1, 2, NA, NA], dtype="Int64") + result = idx.get_indexer_for(Index([1, NA], dtype="Int64")) + expected = np.array([0, 2, 3], dtype=result.dtype) + tm.assert_numpy_array_equal(result, expected) + + +class TestConvertSliceIndexer: + def test_convert_almost_null_slice(self, index): + # slice with None at both ends, but not step + + key = slice(None, None, "foo") + + if isinstance(index, IntervalIndex): + msg = "label-based slicing with step!=1 is not supported for IntervalIndex" + with pytest.raises(ValueError, match=msg): + index._convert_slice_indexer(key, "loc") + else: + msg = "'>=' not supported between instances of 'str' and 'int'" + with pytest.raises(TypeError, match=msg): + index._convert_slice_indexer(key, "loc") + + +class TestPutmask: + def test_putmask_with_wrong_mask(self, index): + # GH#18368 + if not len(index): + pytest.skip("Test doesn't make sense for empty index") + + fill = index[0] + + msg = "putmask: mask and data must be the same size" + with pytest.raises(ValueError, match=msg): + index.putmask(np.ones(len(index) + 1, np.bool_), fill) + + with pytest.raises(ValueError, match=msg): + index.putmask(np.ones(len(index) - 1, np.bool_), fill) + + with pytest.raises(ValueError, match=msg): + index.putmask("foo", fill) + + +@pytest.mark.parametrize( + "idx", [Index([1, 2, 3]), Index([0.1, 0.2, 0.3]), Index(["a", "b", "c"])] +) +def test_getitem_deprecated_float(idx): + # https://github.com/pandas-dev/pandas/issues/34191 + + msg = "Indexing with a float is no longer supported" + with pytest.raises(IndexError, match=msg): + idx[1.0] + + +@pytest.mark.parametrize( + "idx,target,expected", + [ + ([np.nan, "var1", np.nan], [np.nan], np.array([0, 2], dtype=np.intp)), + ( + [np.nan, "var1", np.nan], + [np.nan, "var1"], + np.array([0, 2, 1], dtype=np.intp), + ), + ( + np.array([np.nan, "var1", np.nan], dtype=object), + [np.nan], + np.array([0, 2], dtype=np.intp), + ), + ( + DatetimeIndex(["2020-08-05", NaT, NaT]), + [NaT], + np.array([1, 2], dtype=np.intp), + ), + (["a", "b", "a", np.nan], [np.nan], np.array([3], dtype=np.intp)), + ( + np.array(["b", np.nan, float("NaN"), "b"], dtype=object), + Index([np.nan], dtype=object), + np.array([1, 2], dtype=np.intp), + ), + ], +) +def test_get_indexer_non_unique_multiple_nans(idx, target, expected): + # GH 35392 + axis = Index(idx) + actual = axis.get_indexer_for(target) + tm.assert_numpy_array_equal(actual, expected) + + +def test_get_indexer_non_unique_nans_in_object_dtype_target(nulls_fixture): + idx = Index([1.0, 2.0]) + target = Index([1, nulls_fixture], dtype="object") + + result_idx, result_missing = idx.get_indexer_non_unique(target) + tm.assert_numpy_array_equal(result_idx, np.array([0, -1], dtype=np.intp)) + tm.assert_numpy_array_equal(result_missing, np.array([1], dtype=np.intp)) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_numpy_compat.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_numpy_compat.py new file mode 100644 index 0000000000000000000000000000000000000000..ace78d77350cbdc4ca3aa837720767a965443051 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_numpy_compat.py @@ -0,0 +1,189 @@ +import numpy as np +import pytest + +from pandas import ( + CategoricalIndex, + DatetimeIndex, + Index, + PeriodIndex, + TimedeltaIndex, + isna, +) +import pandas._testing as tm +from pandas.api.types import ( + is_complex_dtype, + is_numeric_dtype, +) +from pandas.core.arrays import BooleanArray +from pandas.core.indexes.datetimelike import DatetimeIndexOpsMixin + + +def test_numpy_ufuncs_out(index): + result = index == index + + out = np.empty(index.shape, dtype=bool) + np.equal(index, index, out=out) + tm.assert_numpy_array_equal(out, result) + + if not index._is_multi: + # same thing on the ExtensionArray + out = np.empty(index.shape, dtype=bool) + np.equal(index.array, index.array, out=out) + tm.assert_numpy_array_equal(out, result) + + +@pytest.mark.parametrize( + "func", + [ + np.exp, + np.exp2, + np.expm1, + np.log, + np.log2, + np.log10, + np.log1p, + np.sqrt, + np.sin, + np.cos, + np.tan, + np.arcsin, + np.arccos, + np.arctan, + np.sinh, + np.cosh, + np.tanh, + np.arcsinh, + np.arccosh, + np.arctanh, + np.deg2rad, + np.rad2deg, + ], + ids=lambda x: x.__name__, +) +def test_numpy_ufuncs_basic(index, func): + # test ufuncs of numpy, see: + # https://numpy.org/doc/stable/reference/ufuncs.html + + if isinstance(index, DatetimeIndexOpsMixin): + with tm.external_error_raised((TypeError, AttributeError)): + with np.errstate(all="ignore"): + func(index) + elif is_numeric_dtype(index) and not ( + is_complex_dtype(index) and func in [np.deg2rad, np.rad2deg] + ): + # coerces to float (e.g. np.sin) + with np.errstate(all="ignore"): + result = func(index) + arr_result = func(index.values) + if arr_result.dtype == np.float16: + arr_result = arr_result.astype(np.float32) + exp = Index(arr_result, name=index.name) + + tm.assert_index_equal(result, exp) + if isinstance(index.dtype, np.dtype) and is_numeric_dtype(index): + if is_complex_dtype(index): + assert result.dtype == index.dtype + elif index.dtype in ["bool", "int8", "uint8"]: + assert result.dtype in ["float16", "float32"] + elif index.dtype in ["int16", "uint16", "float32"]: + assert result.dtype == "float32" + else: + assert result.dtype == "float64" + else: + # e.g. np.exp with Int64 -> Float64 + assert type(result) is Index + # raise AttributeError or TypeError + elif len(index) == 0: + pass + else: + with tm.external_error_raised((TypeError, AttributeError)): + with np.errstate(all="ignore"): + func(index) + + +@pytest.mark.parametrize( + "func", [np.isfinite, np.isinf, np.isnan, np.signbit], ids=lambda x: x.__name__ +) +def test_numpy_ufuncs_other(index, func): + # test ufuncs of numpy, see: + # https://numpy.org/doc/stable/reference/ufuncs.html + if isinstance(index, (DatetimeIndex, TimedeltaIndex)): + if func in (np.isfinite, np.isinf, np.isnan): + # numpy 1.18 changed isinf and isnan to not raise on dt64/td64 + result = func(index) + assert isinstance(result, np.ndarray) + + out = np.empty(index.shape, dtype=bool) + func(index, out=out) + tm.assert_numpy_array_equal(out, result) + else: + with tm.external_error_raised(TypeError): + func(index) + + elif isinstance(index, PeriodIndex): + with tm.external_error_raised(TypeError): + func(index) + + elif is_numeric_dtype(index) and not ( + is_complex_dtype(index) and func is np.signbit + ): + # Results in bool array + result = func(index) + if not isinstance(index.dtype, np.dtype): + # e.g. Int64 we expect to get BooleanArray back + assert isinstance(result, BooleanArray) + else: + assert isinstance(result, np.ndarray) + + out = np.empty(index.shape, dtype=bool) + func(index, out=out) + + if not isinstance(index.dtype, np.dtype): + tm.assert_numpy_array_equal(out, result._data) + else: + tm.assert_numpy_array_equal(out, result) + + elif len(index) == 0: + pass + else: + with tm.external_error_raised(TypeError): + func(index) + + +@pytest.mark.parametrize("func", [np.maximum, np.minimum]) +def test_numpy_ufuncs_reductions(index, func, request): + # TODO: overlap with tests.series.test_ufunc.test_reductions + if len(index) == 0: + pytest.skip("Test doesn't make sense for empty index.") + + if isinstance(index, CategoricalIndex) and index.dtype.ordered is False: + with pytest.raises(TypeError, match="is not ordered for"): + func.reduce(index) + return + else: + result = func.reduce(index) + + if func is np.maximum: + expected = index.max(skipna=False) + else: + expected = index.min(skipna=False) + # TODO: do we have cases both with and without NAs? + + assert type(result) is type(expected) + if isna(result): + assert isna(expected) + else: + assert result == expected + + +@pytest.mark.parametrize("func", [np.bitwise_and, np.bitwise_or, np.bitwise_xor]) +def test_numpy_ufuncs_bitwise(func): + # https://github.com/pandas-dev/pandas/issues/46769 + idx1 = Index([1, 2, 3, 4], dtype="int64") + idx2 = Index([3, 4, 5, 6], dtype="int64") + + with tm.assert_produces_warning(None): + result = func(idx1, idx2) + + expected = Index(func(idx1.values, idx2.values)) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_old_base.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_old_base.py new file mode 100644 index 0000000000000000000000000000000000000000..ae9b4e108448d1140e85da5cb1164152558740ad --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_old_base.py @@ -0,0 +1,1063 @@ +from __future__ import annotations + +from datetime import datetime +import weakref + +import numpy as np +import pytest + +from pandas._libs.tslibs import Timestamp + +from pandas.core.dtypes.common import ( + is_integer_dtype, + is_numeric_dtype, +) +from pandas.core.dtypes.dtypes import CategoricalDtype + +import pandas as pd +from pandas import ( + CategoricalIndex, + DatetimeIndex, + DatetimeTZDtype, + Index, + IntervalIndex, + MultiIndex, + PeriodIndex, + RangeIndex, + Series, + StringDtype, + TimedeltaIndex, + isna, + period_range, +) +import pandas._testing as tm +import pandas.core.algorithms as algos +from pandas.core.arrays import BaseMaskedArray + + +class TestBase: + @pytest.fixture( + params=[ + RangeIndex(start=0, stop=20, step=2), + Index(np.arange(5, dtype=np.float64)), + Index(np.arange(5, dtype=np.float32)), + Index(np.arange(5, dtype=np.uint64)), + Index(range(0, 20, 2), dtype=np.int64), + Index(range(0, 20, 2), dtype=np.int32), + Index(range(0, 20, 2), dtype=np.int16), + Index(range(0, 20, 2), dtype=np.int8), + Index(list("abcde")), + Index([0, "a", 1, "b", 2, "c"]), + period_range("20130101", periods=5, freq="D"), + TimedeltaIndex( + [ + "0 days 01:00:00", + "1 days 01:00:00", + "2 days 01:00:00", + "3 days 01:00:00", + "4 days 01:00:00", + ], + dtype="timedelta64[ns]", + freq="D", + ), + DatetimeIndex( + ["2013-01-01", "2013-01-02", "2013-01-03", "2013-01-04", "2013-01-05"], + dtype="datetime64[ns]", + freq="D", + ), + IntervalIndex.from_breaks(range(11), closed="right"), + ] + ) + def simple_index(self, request): + return request.param + + def test_pickle_compat_construction(self, simple_index): + # need an object to create with + if isinstance(simple_index, RangeIndex): + pytest.skip("RangeIndex() is a valid constructor") + msg = "|".join( + [ + r"Index\(\.\.\.\) must be called with a collection of some " + r"kind, None was passed", + r"DatetimeIndex\(\) must be called with a collection of some " + r"kind, None was passed", + r"TimedeltaIndex\(\) must be called with a collection of some " + r"kind, None was passed", + r"__new__\(\) missing 1 required positional argument: 'data'", + r"__new__\(\) takes at least 2 arguments \(1 given\)", + ] + ) + with pytest.raises(TypeError, match=msg): + type(simple_index)() + + def test_shift(self, simple_index): + # GH8083 test the base class for shift + if isinstance(simple_index, (DatetimeIndex, TimedeltaIndex, PeriodIndex)): + pytest.skip("Tested in test_ops/test_arithmetic") + idx = simple_index + msg = ( + f"This method is only implemented for DatetimeIndex, PeriodIndex and " + f"TimedeltaIndex; Got type {type(idx).__name__}" + ) + with pytest.raises(NotImplementedError, match=msg): + idx.shift(1) + with pytest.raises(NotImplementedError, match=msg): + idx.shift(1, 2) + + def test_constructor_name_unhashable(self, simple_index): + # GH#29069 check that name is hashable + # See also same-named test in tests.series.test_constructors + idx = simple_index + with pytest.raises(TypeError, match="Index.name must be a hashable type"): + type(idx)(idx, name=[]) + + def test_create_index_existing_name(self, simple_index): + # GH11193, when an existing index is passed, and a new name is not + # specified, the new index should inherit the previous object name + expected = simple_index.copy() + if not isinstance(expected, MultiIndex): + expected.name = "foo" + result = Index(expected) + tm.assert_index_equal(result, expected) + + result = Index(expected, name="bar") + expected.name = "bar" + tm.assert_index_equal(result, expected) + else: + expected.names = ["foo", "bar"] + result = Index(expected) + tm.assert_index_equal( + result, + Index( + Index( + [ + ("foo", "one"), + ("foo", "two"), + ("bar", "one"), + ("baz", "two"), + ("qux", "one"), + ("qux", "two"), + ], + dtype="object", + ), + names=["foo", "bar"], + ), + ) + + result = Index(expected, names=["A", "B"]) + tm.assert_index_equal( + result, + Index( + Index( + [ + ("foo", "one"), + ("foo", "two"), + ("bar", "one"), + ("baz", "two"), + ("qux", "one"), + ("qux", "two"), + ], + dtype="object", + ), + names=["A", "B"], + ), + ) + + def test_numeric_compat(self, simple_index): + idx = simple_index + # Check that this doesn't cover MultiIndex case, if/when it does, + # we can remove multi.test_compat.test_numeric_compat + assert not isinstance(idx, MultiIndex) + if type(idx) is Index: + pytest.skip("Not applicable for Index") + if is_numeric_dtype(simple_index.dtype) or isinstance( + simple_index, TimedeltaIndex + ): + pytest.skip("Tested elsewhere.") + + typ = type(idx._data).__name__ + cls = type(idx).__name__ + lmsg = "|".join( + [ + rf"unsupported operand type\(s\) for \*: '{typ}' and 'int'", + "cannot perform (__mul__|__truediv__|__floordiv__) with " + f"this index type: ({cls}|{typ})", + ] + ) + with pytest.raises(TypeError, match=lmsg): + idx * 1 + rmsg = "|".join( + [ + rf"unsupported operand type\(s\) for \*: 'int' and '{typ}'", + "cannot perform (__rmul__|__rtruediv__|__rfloordiv__) with " + f"this index type: ({cls}|{typ})", + ] + ) + with pytest.raises(TypeError, match=rmsg): + 1 * idx + + div_err = lmsg.replace("*", "/") + with pytest.raises(TypeError, match=div_err): + idx / 1 + div_err = rmsg.replace("*", "/") + with pytest.raises(TypeError, match=div_err): + 1 / idx + + floordiv_err = lmsg.replace("*", "//") + with pytest.raises(TypeError, match=floordiv_err): + idx // 1 + floordiv_err = rmsg.replace("*", "//") + with pytest.raises(TypeError, match=floordiv_err): + 1 // idx + + def test_logical_compat(self, simple_index): + if simple_index.dtype in (object, "string"): + pytest.skip("Tested elsewhere.") + idx = simple_index + if idx.dtype.kind in "iufcbm": + assert idx.all() == idx._values.all() + assert idx.all() == idx.to_series().all() + assert idx.any() == idx._values.any() + assert idx.any() == idx.to_series().any() + else: + msg = "cannot perform (any|all)" + if isinstance(idx, IntervalIndex): + msg = ( + r"'IntervalArray' with dtype interval\[.*\] does " + "not support reduction '(any|all)'" + ) + with pytest.raises(TypeError, match=msg): + idx.all() + with pytest.raises(TypeError, match=msg): + idx.any() + + def test_repr_roundtrip(self, simple_index): + if isinstance(simple_index, IntervalIndex): + pytest.skip(f"Not a valid repr for {type(simple_index).__name__}") + idx = simple_index + tm.assert_index_equal(eval(repr(idx)), idx) + + def test_repr_max_seq_item_setting(self, simple_index): + # GH10182 + if isinstance(simple_index, IntervalIndex): + pytest.skip(f"Not a valid repr for {type(simple_index).__name__}") + idx = simple_index + idx = idx.repeat(50) + with pd.option_context("display.max_seq_items", None): + repr(idx) + assert "..." not in str(idx) + + @pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") + def test_ensure_copied_data(self, index): + # Check the "copy" argument of each Index.__new__ is honoured + # GH12309 + init_kwargs = {} + if isinstance(index, PeriodIndex): + # Needs "freq" specification: + init_kwargs["freq"] = index.freq + elif isinstance(index, (RangeIndex, MultiIndex, CategoricalIndex)): + pytest.skip( + "RangeIndex cannot be initialized from data, " + "MultiIndex and CategoricalIndex are tested separately" + ) + elif index.dtype == object and index.inferred_type in ["boolean", "string"]: + init_kwargs["dtype"] = index.dtype + + index_type = type(index) + result = index_type(index.values, copy=True, **init_kwargs) + if isinstance(index.dtype, DatetimeTZDtype): + result = result.tz_localize("UTC").tz_convert(index.tz) + if isinstance(index, (DatetimeIndex, TimedeltaIndex)): + index = index._with_freq(None) + + tm.assert_index_equal(index, result) + + if isinstance(index, PeriodIndex): + # .values an object array of Period, thus copied + depr_msg = "The 'ordinal' keyword in PeriodIndex is deprecated" + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + result = index_type(ordinal=index.asi8, copy=False, **init_kwargs) + tm.assert_numpy_array_equal(index.asi8, result.asi8, check_same="same") + elif isinstance(index, IntervalIndex): + # checked in test_interval.py + pass + elif type(index) is Index and not isinstance(index.dtype, np.dtype): + result = index_type(index.values, copy=False, **init_kwargs) + tm.assert_index_equal(result, index) + + if isinstance(index._values, BaseMaskedArray): + assert np.shares_memory(index._values._data, result._values._data) + tm.assert_numpy_array_equal( + index._values._data, result._values._data, check_same="same" + ) + assert np.shares_memory(index._values._mask, result._values._mask) + tm.assert_numpy_array_equal( + index._values._mask, result._values._mask, check_same="same" + ) + elif ( + isinstance(index.dtype, StringDtype) and index.dtype.storage == "python" + ): + assert np.shares_memory(index._values._ndarray, result._values._ndarray) + tm.assert_numpy_array_equal( + index._values._ndarray, result._values._ndarray, check_same="same" + ) + elif ( + isinstance(index.dtype, StringDtype) + and index.dtype.storage == "pyarrow" + ): + assert tm.shares_memory(result._values, index._values) + else: + raise NotImplementedError(index.dtype) + else: + result = index_type(index.values, copy=False, **init_kwargs) + tm.assert_numpy_array_equal(index.values, result.values, check_same="same") + + def test_memory_usage(self, index): + index._engine.clear_mapping() + result = index.memory_usage() + if index.empty: + # we report 0 for no-length + assert result == 0 + return + + # non-zero length + index.get_loc(index[0]) + result2 = index.memory_usage() + result3 = index.memory_usage(deep=True) + + # RangeIndex, IntervalIndex + # don't have engines + # Index[EA] has engine but it does not have a Hashtable .mapping + if not isinstance(index, (RangeIndex, IntervalIndex)) and not ( + type(index) is Index and not isinstance(index.dtype, np.dtype) + ): + assert result2 > result + + if index.inferred_type == "object": + assert result3 > result2 + + def test_argsort(self, index): + if isinstance(index, CategoricalIndex): + pytest.skip(f"{type(self).__name__} separately tested") + + result = index.argsort() + expected = np.array(index).argsort() + tm.assert_numpy_array_equal(result, expected, check_dtype=False) + + def test_numpy_argsort(self, index): + result = np.argsort(index) + expected = index.argsort() + tm.assert_numpy_array_equal(result, expected) + + result = np.argsort(index, kind="mergesort") + expected = index.argsort(kind="mergesort") + tm.assert_numpy_array_equal(result, expected) + + # these are the only two types that perform + # pandas compatibility input validation - the + # rest already perform separate (or no) such + # validation via their 'values' attribute as + # defined in pandas.core.indexes/base.py - they + # cannot be changed at the moment due to + # backwards compatibility concerns + if isinstance(index, (CategoricalIndex, RangeIndex)): + msg = "the 'axis' parameter is not supported" + with pytest.raises(ValueError, match=msg): + np.argsort(index, axis=1) + + msg = "the 'order' parameter is not supported" + with pytest.raises(ValueError, match=msg): + np.argsort(index, order=("a", "b")) + + def test_repeat(self, simple_index): + rep = 2 + idx = simple_index.copy() + new_index_cls = idx._constructor + expected = new_index_cls(idx.values.repeat(rep), name=idx.name) + tm.assert_index_equal(idx.repeat(rep), expected) + + idx = simple_index + rep = np.arange(len(idx)) + expected = new_index_cls(idx.values.repeat(rep), name=idx.name) + tm.assert_index_equal(idx.repeat(rep), expected) + + def test_numpy_repeat(self, simple_index): + rep = 2 + idx = simple_index + expected = idx.repeat(rep) + tm.assert_index_equal(np.repeat(idx, rep), expected) + + msg = "the 'axis' parameter is not supported" + with pytest.raises(ValueError, match=msg): + np.repeat(idx, rep, axis=0) + + def test_where(self, listlike_box, simple_index): + if isinstance(simple_index, (IntervalIndex, PeriodIndex)) or is_numeric_dtype( + simple_index.dtype + ): + pytest.skip("Tested elsewhere.") + klass = listlike_box + + idx = simple_index + if isinstance(idx, (DatetimeIndex, TimedeltaIndex)): + # where does not preserve freq + idx = idx._with_freq(None) + + cond = [True] * len(idx) + result = idx.where(klass(cond)) + expected = idx + tm.assert_index_equal(result, expected) + + cond = [False] + [True] * len(idx[1:]) + expected = Index([idx._na_value] + idx[1:].tolist(), dtype=idx.dtype) + result = idx.where(klass(cond)) + tm.assert_index_equal(result, expected) + + def test_insert_base(self, index): + trimmed = index[1:4] + + if not len(index): + pytest.skip("Not applicable for empty index") + + # test 0th element + warn = None + if index.dtype == object and index.inferred_type == "boolean": + # GH#51363 + warn = FutureWarning + msg = "The behavior of Index.insert with object-dtype is deprecated" + with tm.assert_produces_warning(warn, match=msg): + result = trimmed.insert(0, index[0]) + assert index[0:4].equals(result) + + def test_insert_out_of_bounds(self, index, using_infer_string): + # TypeError/IndexError matches what np.insert raises in these cases + + if len(index) > 0: + err = TypeError + else: + err = IndexError + if len(index) == 0: + # 0 vs 0.5 in error message varies with numpy version + msg = "index (0|0.5) is out of bounds for axis 0 with size 0" + else: + msg = "slice indices must be integers or None or have an __index__ method" + + if using_infer_string: + if index.dtype == "string" or index.dtype == "category": # noqa: PLR1714 + msg = "loc must be an integer between" + elif index.dtype == "object" and len(index) == 0: + msg = "loc must be an integer between" + err = TypeError + + with pytest.raises(err, match=msg): + index.insert(0.5, "foo") + + msg = "|".join( + [ + r"index -?\d+ is out of bounds for axis 0 with size \d+", + "loc must be an integer between", + ] + ) + with pytest.raises(IndexError, match=msg): + index.insert(len(index) + 1, 1) + + with pytest.raises(IndexError, match=msg): + index.insert(-len(index) - 1, 1) + + def test_delete_base(self, index): + if not len(index): + pytest.skip("Not applicable for empty index") + + if isinstance(index, RangeIndex): + # tested in class + pytest.skip(f"{type(self).__name__} tested elsewhere") + + expected = index[1:] + result = index.delete(0) + assert result.equals(expected) + assert result.name == expected.name + + expected = index[:-1] + result = index.delete(-1) + assert result.equals(expected) + assert result.name == expected.name + + length = len(index) + msg = f"index {length} is out of bounds for axis 0 with size {length}" + with pytest.raises(IndexError, match=msg): + index.delete(length) + + @pytest.mark.filterwarnings(r"ignore:Dtype inference:FutureWarning") + @pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") + def test_equals(self, index): + if isinstance(index, IntervalIndex): + pytest.skip(f"{type(index).__name__} tested elsewhere") + + is_ea_idx = type(index) is Index and not isinstance(index.dtype, np.dtype) + + assert index.equals(index) + assert index.equals(index.copy()) + if not is_ea_idx: + # doesn't hold for e.g. IntegerDtype + assert index.equals(index.astype(object)) + + assert not index.equals(list(index)) + assert not index.equals(np.array(index)) + + # Cannot pass in non-int64 dtype to RangeIndex + if not isinstance(index, RangeIndex) and not is_ea_idx: + same_values = Index(index, dtype=object) + assert index.equals(same_values) + assert same_values.equals(index) + + if index.nlevels == 1: + # do not test MultiIndex + assert not index.equals(Series(index)) + + def test_equals_op(self, simple_index): + # GH9947, GH10637 + index_a = simple_index + + n = len(index_a) + index_b = index_a[0:-1] + index_c = index_a[0:-1].append(index_a[-2:-1]) + index_d = index_a[0:1] + + msg = "Lengths must match|could not be broadcast" + with pytest.raises(ValueError, match=msg): + index_a == index_b + expected1 = np.array([True] * n) + expected2 = np.array([True] * (n - 1) + [False]) + tm.assert_numpy_array_equal(index_a == index_a, expected1) + tm.assert_numpy_array_equal(index_a == index_c, expected2) + + # test comparisons with numpy arrays + array_a = np.array(index_a) + array_b = np.array(index_a[0:-1]) + array_c = np.array(index_a[0:-1].append(index_a[-2:-1])) + array_d = np.array(index_a[0:1]) + with pytest.raises(ValueError, match=msg): + index_a == array_b + tm.assert_numpy_array_equal(index_a == array_a, expected1) + tm.assert_numpy_array_equal(index_a == array_c, expected2) + + # test comparisons with Series + series_a = Series(array_a) + series_b = Series(array_b) + series_c = Series(array_c) + series_d = Series(array_d) + with pytest.raises(ValueError, match=msg): + index_a == series_b + + tm.assert_numpy_array_equal(index_a == series_a, expected1) + tm.assert_numpy_array_equal(index_a == series_c, expected2) + + # cases where length is 1 for one of them + with pytest.raises(ValueError, match="Lengths must match"): + index_a == index_d + with pytest.raises(ValueError, match="Lengths must match"): + index_a == series_d + with pytest.raises(ValueError, match="Lengths must match"): + index_a == array_d + msg = "Can only compare identically-labeled Series objects" + with pytest.raises(ValueError, match=msg): + series_a == series_d + with pytest.raises(ValueError, match="Lengths must match"): + series_a == array_d + + # comparing with a scalar should broadcast; note that we are excluding + # MultiIndex because in this case each item in the index is a tuple of + # length 2, and therefore is considered an array of length 2 in the + # comparison instead of a scalar + if not isinstance(index_a, MultiIndex): + expected3 = np.array([False] * (len(index_a) - 2) + [True, False]) + # assuming the 2nd to last item is unique in the data + item = index_a[-2] + tm.assert_numpy_array_equal(index_a == item, expected3) + tm.assert_series_equal(series_a == item, Series(expected3)) + + def test_format(self, simple_index): + # GH35439 + if is_numeric_dtype(simple_index.dtype) or isinstance( + simple_index, DatetimeIndex + ): + pytest.skip("Tested elsewhere.") + idx = simple_index + expected = [str(x) for x in idx] + msg = r"Index\.format is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + assert idx.format() == expected + + def test_format_empty(self, simple_index): + # GH35712 + if isinstance(simple_index, (PeriodIndex, RangeIndex)): + pytest.skip("Tested elsewhere") + empty_idx = type(simple_index)([]) + msg = r"Index\.format is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + assert empty_idx.format() == [] + with tm.assert_produces_warning(FutureWarning, match=msg): + assert empty_idx.format(name=True) == [""] + + def test_fillna(self, index): + # GH 11343 + if len(index) == 0: + pytest.skip("Not relevant for empty index") + elif index.dtype == bool: + pytest.skip(f"{index.dtype} cannot hold NAs") + elif isinstance(index, Index) and is_integer_dtype(index.dtype): + pytest.skip(f"Not relevant for Index with {index.dtype}") + elif isinstance(index, MultiIndex): + idx = index.copy(deep=True) + msg = "isna is not defined for MultiIndex" + with pytest.raises(NotImplementedError, match=msg): + idx.fillna(idx[0]) + else: + idx = index.copy(deep=True) + result = idx.fillna(idx[0]) + tm.assert_index_equal(result, idx) + assert result is not idx + + msg = "'value' must be a scalar, passed: " + with pytest.raises(TypeError, match=msg): + idx.fillna([idx[0]]) + + idx = index.copy(deep=True) + values = idx._values + + values[1] = np.nan + + idx = type(index)(values) + + msg = "does not support 'downcast'" + msg2 = r"The 'downcast' keyword in .*Index\.fillna is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg2): + with pytest.raises(NotImplementedError, match=msg): + # For now at least, we only raise if there are NAs present + idx.fillna(idx[0], downcast="infer") + + expected = np.array([False] * len(idx), dtype=bool) + expected[1] = True + tm.assert_numpy_array_equal(idx._isnan, expected) + assert idx.hasnans is True + + def test_nulls(self, index): + # this is really a smoke test for the methods + # as these are adequately tested for function elsewhere + if len(index) == 0: + tm.assert_numpy_array_equal(index.isna(), np.array([], dtype=bool)) + elif isinstance(index, MultiIndex): + idx = index.copy() + msg = "isna is not defined for MultiIndex" + with pytest.raises(NotImplementedError, match=msg): + idx.isna() + elif not index.hasnans: + tm.assert_numpy_array_equal(index.isna(), np.zeros(len(index), dtype=bool)) + tm.assert_numpy_array_equal(index.notna(), np.ones(len(index), dtype=bool)) + else: + result = isna(index) + tm.assert_numpy_array_equal(index.isna(), result) + tm.assert_numpy_array_equal(index.notna(), ~result) + + def test_empty(self, simple_index): + # GH 15270 + idx = simple_index + assert not idx.empty + assert idx[:0].empty + + def test_join_self_unique(self, join_type, simple_index): + idx = simple_index + if idx.is_unique: + joined = idx.join(idx, how=join_type) + expected = simple_index + if join_type == "outer": + expected = algos.safe_sort(expected) + tm.assert_index_equal(joined, expected) + + def test_map(self, simple_index): + # callable + if isinstance(simple_index, (TimedeltaIndex, PeriodIndex)): + pytest.skip("Tested elsewhere.") + idx = simple_index + + result = idx.map(lambda x: x) + # RangeIndex are equivalent to the similar Index with int64 dtype + tm.assert_index_equal(result, idx, exact="equiv") + + @pytest.mark.parametrize( + "mapper", + [ + lambda values, index: {i: e for e, i in zip(values, index)}, + lambda values, index: Series(values, index), + ], + ) + @pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") + def test_map_dictlike(self, mapper, simple_index, request): + idx = simple_index + if isinstance(idx, (DatetimeIndex, TimedeltaIndex, PeriodIndex)): + pytest.skip("Tested elsewhere.") + + identity = mapper(idx.values, idx) + + result = idx.map(identity) + # RangeIndex are equivalent to the similar Index with int64 dtype + tm.assert_index_equal(result, idx, exact="equiv") + + # empty mappable + dtype = None + if idx.dtype.kind == "f": + dtype = idx.dtype + + expected = Index([np.nan] * len(idx), dtype=dtype) + result = idx.map(mapper(expected, idx)) + tm.assert_index_equal(result, expected) + + def test_map_str(self, simple_index): + # GH 31202 + if isinstance(simple_index, CategoricalIndex): + pytest.skip("See test_map.py") + idx = simple_index + result = idx.map(str) + expected = Index([str(x) for x in idx]) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("copy", [True, False]) + @pytest.mark.parametrize("name", [None, "foo"]) + @pytest.mark.parametrize("ordered", [True, False]) + def test_astype_category(self, copy, name, ordered, simple_index): + # GH 18630 + idx = simple_index + if name: + idx = idx.rename(name) + + # standard categories + dtype = CategoricalDtype(ordered=ordered) + result = idx.astype(dtype, copy=copy) + expected = CategoricalIndex(idx, name=name, ordered=ordered) + tm.assert_index_equal(result, expected, exact=True) + + # non-standard categories + dtype = CategoricalDtype(idx.unique().tolist()[:-1], ordered) + result = idx.astype(dtype, copy=copy) + expected = CategoricalIndex(idx, name=name, dtype=dtype) + tm.assert_index_equal(result, expected, exact=True) + + if ordered is False: + # dtype='category' defaults to ordered=False, so only test once + result = idx.astype("category", copy=copy) + expected = CategoricalIndex(idx, name=name) + tm.assert_index_equal(result, expected, exact=True) + + def test_is_unique(self, simple_index): + # initialize a unique index + index = simple_index.drop_duplicates() + assert index.is_unique is True + + # empty index should be unique + index_empty = index[:0] + assert index_empty.is_unique is True + + # test basic dupes + index_dup = index.insert(0, index[0]) + assert index_dup.is_unique is False + + # single NA should be unique + index_na = index.insert(0, np.nan) + assert index_na.is_unique is True + + # multiple NA should not be unique + index_na_dup = index_na.insert(0, np.nan) + assert index_na_dup.is_unique is False + + @pytest.mark.arm_slow + def test_engine_reference_cycle(self, simple_index): + # GH27585 + index = simple_index.copy() + ref = weakref.ref(index) + index._engine + del index + assert ref() is None + + def test_getitem_2d_deprecated(self, simple_index): + # GH#30588, GH#31479 + if isinstance(simple_index, IntervalIndex): + pytest.skip("Tested elsewhere") + idx = simple_index + msg = "Multi-dimensional indexing|too many|only" + with pytest.raises((ValueError, IndexError), match=msg): + idx[:, None] + + if not isinstance(idx, RangeIndex): + # GH#44051 RangeIndex already raised pre-2.0 with a different message + with pytest.raises((ValueError, IndexError), match=msg): + idx[True] + with pytest.raises((ValueError, IndexError), match=msg): + idx[False] + else: + msg = "only integers, slices" + with pytest.raises(IndexError, match=msg): + idx[True] + with pytest.raises(IndexError, match=msg): + idx[False] + + def test_copy_shares_cache(self, simple_index): + # GH32898, GH36840 + idx = simple_index + idx.get_loc(idx[0]) # populates the _cache. + copy = idx.copy() + + assert copy._cache is idx._cache + + def test_shallow_copy_shares_cache(self, simple_index): + # GH32669, GH36840 + idx = simple_index + idx.get_loc(idx[0]) # populates the _cache. + shallow_copy = idx._view() + + assert shallow_copy._cache is idx._cache + + shallow_copy = idx._shallow_copy(idx._data) + assert shallow_copy._cache is not idx._cache + assert shallow_copy._cache == {} + + def test_index_groupby(self, simple_index): + idx = simple_index[:5] + to_groupby = np.array([1, 2, np.nan, 2, 1]) + tm.assert_dict_equal( + idx.groupby(to_groupby), {1.0: idx[[0, 4]], 2.0: idx[[1, 3]]} + ) + + to_groupby = DatetimeIndex( + [ + datetime(2011, 11, 1), + datetime(2011, 12, 1), + pd.NaT, + datetime(2011, 12, 1), + datetime(2011, 11, 1), + ], + tz="UTC", + ).values + + ex_keys = [Timestamp("2011-11-01"), Timestamp("2011-12-01")] + expected = {ex_keys[0]: idx[[0, 4]], ex_keys[1]: idx[[1, 3]]} + tm.assert_dict_equal(idx.groupby(to_groupby), expected) + + def test_append_preserves_dtype(self, simple_index): + # In particular Index with dtype float32 + index = simple_index + N = len(index) + + result = index.append(index) + assert result.dtype == index.dtype + tm.assert_index_equal(result[:N], index, check_exact=True) + tm.assert_index_equal(result[N:], index, check_exact=True) + + alt = index.take(list(range(N)) * 2) + tm.assert_index_equal(result, alt, check_exact=True) + + def test_inv(self, simple_index, using_infer_string): + idx = simple_index + + if idx.dtype.kind in ["i", "u"]: + res = ~idx + expected = Index(~idx.values, name=idx.name) + tm.assert_index_equal(res, expected) + + # check that we are matching Series behavior + res2 = ~Series(idx) + tm.assert_series_equal(res2, Series(expected)) + else: + if idx.dtype.kind == "f": + msg = "ufunc 'invert' not supported for the input types" + else: + msg = "bad operand|__invert__ is not supported for string dtype" + with pytest.raises(TypeError, match=msg): + ~idx + + # check that we get the same behavior with Series + with pytest.raises(TypeError, match=msg): + ~Series(idx) + + def test_is_boolean_is_deprecated(self, simple_index): + # GH50042 + idx = simple_index + with tm.assert_produces_warning(FutureWarning): + idx.is_boolean() + + def test_is_floating_is_deprecated(self, simple_index): + # GH50042 + idx = simple_index + with tm.assert_produces_warning(FutureWarning): + idx.is_floating() + + def test_is_integer_is_deprecated(self, simple_index): + # GH50042 + idx = simple_index + with tm.assert_produces_warning(FutureWarning): + idx.is_integer() + + def test_holds_integer_deprecated(self, simple_index): + # GH50243 + idx = simple_index + msg = f"{type(idx).__name__}.holds_integer is deprecated. " + with tm.assert_produces_warning(FutureWarning, match=msg): + idx.holds_integer() + + def test_is_numeric_is_deprecated(self, simple_index): + # GH50042 + idx = simple_index + with tm.assert_produces_warning( + FutureWarning, + match=f"{type(idx).__name__}.is_numeric is deprecated. ", + ): + idx.is_numeric() + + def test_is_categorical_is_deprecated(self, simple_index): + # GH50042 + idx = simple_index + with tm.assert_produces_warning( + FutureWarning, + match=r"Use pandas\.api\.types\.is_categorical_dtype instead", + ): + idx.is_categorical() + + def test_is_interval_is_deprecated(self, simple_index): + # GH50042 + idx = simple_index + with tm.assert_produces_warning(FutureWarning): + idx.is_interval() + + def test_is_object_is_deprecated(self, simple_index): + # GH50042 + idx = simple_index + with tm.assert_produces_warning(FutureWarning): + idx.is_object() + + +class TestNumericBase: + @pytest.fixture( + params=[ + RangeIndex(start=0, stop=20, step=2), + Index(np.arange(5, dtype=np.float64)), + Index(np.arange(5, dtype=np.float32)), + Index(np.arange(5, dtype=np.uint64)), + Index(range(0, 20, 2), dtype=np.int64), + Index(range(0, 20, 2), dtype=np.int32), + Index(range(0, 20, 2), dtype=np.int16), + Index(range(0, 20, 2), dtype=np.int8), + ] + ) + def simple_index(self, request): + return request.param + + def test_constructor_unwraps_index(self, simple_index): + if isinstance(simple_index, RangeIndex): + pytest.skip("Tested elsewhere.") + index_cls = type(simple_index) + dtype = simple_index.dtype + + idx = Index([1, 2], dtype=dtype) + result = index_cls(idx) + expected = np.array([1, 2], dtype=idx.dtype) + tm.assert_numpy_array_equal(result._data, expected) + + def test_can_hold_identifiers(self, simple_index): + idx = simple_index + key = idx[0] + assert idx._can_hold_identifiers_and_holds_name(key) is False + + def test_view(self, simple_index): + if isinstance(simple_index, RangeIndex): + pytest.skip("Tested elsewhere.") + index_cls = type(simple_index) + dtype = simple_index.dtype + + idx = index_cls([], dtype=dtype, name="Foo") + idx_view = idx.view() + assert idx_view.name == "Foo" + + idx_view = idx.view(dtype) + tm.assert_index_equal(idx, index_cls(idx_view, name="Foo"), exact=True) + + msg = "Passing a type in .*Index.view is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + idx_view = idx.view(index_cls) + tm.assert_index_equal(idx, index_cls(idx_view, name="Foo"), exact=True) + + def test_format(self, simple_index): + # GH35439 + if isinstance(simple_index, DatetimeIndex): + pytest.skip("Tested elsewhere") + idx = simple_index + max_width = max(len(str(x)) for x in idx) + expected = [str(x).ljust(max_width) for x in idx] + msg = r"Index\.format is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + assert idx.format() == expected + + def test_insert_non_na(self, simple_index): + # GH#43921 inserting an element that we know we can hold should + # not change dtype or type (except for RangeIndex) + index = simple_index + + result = index.insert(0, index[0]) + + expected = Index([index[0]] + list(index), dtype=index.dtype) + tm.assert_index_equal(result, expected, exact=True) + + def test_insert_na(self, nulls_fixture, simple_index): + # GH 18295 (test missing) + index = simple_index + na_val = nulls_fixture + + if na_val is pd.NaT: + expected = Index([index[0], pd.NaT] + list(index[1:]), dtype=object) + else: + expected = Index([index[0], np.nan] + list(index[1:])) + # GH#43921 we preserve float dtype + if index.dtype.kind == "f": + expected = Index(expected, dtype=index.dtype) + + result = index.insert(1, na_val) + tm.assert_index_equal(result, expected, exact=True) + + def test_arithmetic_explicit_conversions(self, simple_index): + # GH 8608 + # add/sub are overridden explicitly for Float/Int Index + index_cls = type(simple_index) + if index_cls is RangeIndex: + idx = RangeIndex(5) + else: + idx = index_cls(np.arange(5, dtype="int64")) + + # float conversions + arr = np.arange(5, dtype="int64") * 3.2 + expected = Index(arr, dtype=np.float64) + fidx = idx * 3.2 + tm.assert_index_equal(fidx, expected) + fidx = 3.2 * idx + tm.assert_index_equal(fidx, expected) + + # interops with numpy arrays + expected = Index(arr, dtype=np.float64) + a = np.zeros(5, dtype="float64") + result = fidx - a + tm.assert_index_equal(result, expected) + + expected = Index(-arr, dtype=np.float64) + a = np.zeros(5, dtype="float64") + result = a - fidx + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("complex_dtype", [np.complex64, np.complex128]) + def test_astype_to_complex(self, complex_dtype, simple_index): + result = simple_index.astype(complex_dtype) + + assert type(result) is Index and result.dtype == complex_dtype + + def test_cast_string(self, simple_index): + if isinstance(simple_index, RangeIndex): + pytest.skip("casting of strings not relevant for RangeIndex") + result = type(simple_index)(["0", "1", "2"], dtype=simple_index.dtype) + expected = type(simple_index)([0, 1, 2], dtype=simple_index.dtype) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_setops.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_setops.py new file mode 100644 index 0000000000000000000000000000000000000000..0980e93c5727544816141b3dab71041116f59db7 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_setops.py @@ -0,0 +1,973 @@ +""" +The tests in this package are to ensure the proper resultant dtypes of +set operations. +""" +from datetime import datetime +import operator + +import numpy as np +import pytest + +from pandas._libs import lib + +from pandas.core.dtypes.cast import find_common_type + +from pandas import ( + CategoricalDtype, + CategoricalIndex, + DatetimeTZDtype, + Index, + MultiIndex, + PeriodDtype, + RangeIndex, + Series, + Timestamp, +) +import pandas._testing as tm +from pandas.api.types import ( + is_signed_integer_dtype, + pandas_dtype, +) + + +def equal_contents(arr1, arr2) -> bool: + """ + Checks if the set of unique elements of arr1 and arr2 are equivalent. + """ + return frozenset(arr1) == frozenset(arr2) + + +@pytest.fixture( + params=tm.ALL_REAL_NUMPY_DTYPES + + [ + "object", + "category", + "datetime64[ns]", + "timedelta64[ns]", + ] +) +def any_dtype_for_small_pos_integer_indexes(request): + """ + Dtypes that can be given to an Index with small positive integers. + + This means that for any dtype `x` in the params list, `Index([1, 2, 3], dtype=x)` is + valid and gives the correct Index (sub-)class. + """ + return request.param + + +def test_union_same_types(index): + # Union with a non-unique, non-monotonic index raises error + # Only needed for bool index factory + idx1 = index.sort_values() + idx2 = index.sort_values() + assert idx1.union(idx2).dtype == idx1.dtype + + +def test_union_different_types(index_flat, index_flat2, request, using_infer_string): + # This test only considers combinations of indices + # GH 23525 + idx1 = index_flat + idx2 = index_flat2 + + if ( + not idx1.is_unique + and not idx2.is_unique + and idx1.dtype.kind == "i" + and idx2.dtype.kind == "b" + ) or ( + not idx2.is_unique + and not idx1.is_unique + and idx2.dtype.kind == "i" + and idx1.dtype.kind == "b" + ): + # Each condition had idx[1|2].is_monotonic_decreasing + # but failed when e.g. + # idx1 = Index( + # [True, True, True, True, True, True, True, True, False, False], dtype='bool' + # ) + # idx2 = Index([0, 0, 1, 1, 2, 2], dtype='int64') + mark = pytest.mark.xfail( + reason="GH#44000 True==1", raises=ValueError, strict=False + ) + request.applymarker(mark) + + common_dtype = find_common_type([idx1.dtype, idx2.dtype]) + if using_infer_string: + if len(idx1) == 0 and (idx1.dtype.kind == "O" or isinstance(idx1, RangeIndex)): + common_dtype = idx2.dtype + elif len(idx2) == 0 and ( + idx2.dtype.kind == "O" or isinstance(idx2, RangeIndex) + ): + common_dtype = idx1.dtype + + warn = None + msg = "'<' not supported between" + if not len(idx1) or not len(idx2): + pass + elif (idx1.dtype.kind == "c" and (not lib.is_np_dtype(idx2.dtype, "iufc"))) or ( + idx2.dtype.kind == "c" and (not lib.is_np_dtype(idx1.dtype, "iufc")) + ): + # complex objects non-sortable + warn = RuntimeWarning + elif ( + isinstance(idx1.dtype, PeriodDtype) and isinstance(idx2.dtype, CategoricalDtype) + ) or ( + isinstance(idx2.dtype, PeriodDtype) and isinstance(idx1.dtype, CategoricalDtype) + ): + warn = FutureWarning + msg = r"PeriodDtype\[B\] is deprecated" + mark = pytest.mark.xfail( + reason="Warning not produced on all builds", + raises=AssertionError, + strict=False, + ) + request.applymarker(mark) + + any_uint64 = np.uint64 in (idx1.dtype, idx2.dtype) + idx1_signed = is_signed_integer_dtype(idx1.dtype) + idx2_signed = is_signed_integer_dtype(idx2.dtype) + + # Union with a non-unique, non-monotonic index raises error + # This applies to the boolean index + idx1 = idx1.sort_values() + idx2 = idx2.sort_values() + + with tm.assert_produces_warning(warn, match=msg): + res1 = idx1.union(idx2) + res2 = idx2.union(idx1) + + if any_uint64 and (idx1_signed or idx2_signed): + assert res1.dtype == np.dtype("O") + assert res2.dtype == np.dtype("O") + else: + assert res1.dtype == common_dtype + assert res2.dtype == common_dtype + + +@pytest.mark.parametrize( + "idx1,idx2", + [ + (Index(np.arange(5), dtype=np.int64), RangeIndex(5)), + (Index(np.arange(5), dtype=np.float64), Index(np.arange(5), dtype=np.int64)), + (Index(np.arange(5), dtype=np.float64), RangeIndex(5)), + (Index(np.arange(5), dtype=np.float64), Index(np.arange(5), dtype=np.uint64)), + ], +) +def test_compatible_inconsistent_pairs(idx1, idx2): + # GH 23525 + res1 = idx1.union(idx2) + res2 = idx2.union(idx1) + + assert res1.dtype in (idx1.dtype, idx2.dtype) + assert res2.dtype in (idx1.dtype, idx2.dtype) + + +@pytest.mark.parametrize( + "left, right, expected", + [ + ("int64", "int64", "int64"), + ("int64", "uint64", "object"), + ("int64", "float64", "float64"), + ("uint64", "float64", "float64"), + ("uint64", "uint64", "uint64"), + ("float64", "float64", "float64"), + ("datetime64[ns]", "int64", "object"), + ("datetime64[ns]", "uint64", "object"), + ("datetime64[ns]", "float64", "object"), + ("datetime64[ns, CET]", "int64", "object"), + ("datetime64[ns, CET]", "uint64", "object"), + ("datetime64[ns, CET]", "float64", "object"), + ("Period[D]", "int64", "object"), + ("Period[D]", "uint64", "object"), + ("Period[D]", "float64", "object"), + ], +) +@pytest.mark.parametrize("names", [("foo", "foo", "foo"), ("foo", "bar", None)]) +def test_union_dtypes(left, right, expected, names): + left = pandas_dtype(left) + right = pandas_dtype(right) + a = Index([], dtype=left, name=names[0]) + b = Index([], dtype=right, name=names[1]) + result = a.union(b) + assert result.dtype == expected + assert result.name == names[2] + + # Testing name retention + # TODO: pin down desired dtype; do we want it to be commutative? + result = a.intersection(b) + assert result.name == names[2] + + +@pytest.mark.parametrize("values", [[1, 2, 2, 3], [3, 3]]) +def test_intersection_duplicates(values): + # GH#31326 + a = Index(values) + b = Index([3, 3]) + result = a.intersection(b) + expected = Index([3]) + tm.assert_index_equal(result, expected) + + +class TestSetOps: + # Set operation tests shared by all indexes in the `index` fixture + @pytest.mark.parametrize("case", [0.5, "xxx"]) + @pytest.mark.parametrize( + "method", ["intersection", "union", "difference", "symmetric_difference"] + ) + def test_set_ops_error_cases(self, case, method, index): + # non-iterable input + msg = "Input must be Index or array-like" + with pytest.raises(TypeError, match=msg): + getattr(index, method)(case) + + @pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") + def test_intersection_base(self, index): + if isinstance(index, CategoricalIndex): + pytest.skip(f"Not relevant for {type(index).__name__}") + + first = index[:5].unique() + second = index[:3].unique() + intersect = first.intersection(second) + tm.assert_index_equal(intersect, second) + + if isinstance(index.dtype, DatetimeTZDtype): + # The second.values below will drop tz, so the rest of this test + # is not applicable. + return + + # GH#10149 + cases = [second.to_numpy(), second.to_series(), second.to_list()] + for case in cases: + result = first.intersection(case) + assert equal_contents(result, second) + + if isinstance(index, MultiIndex): + msg = "other must be a MultiIndex or a list of tuples" + with pytest.raises(TypeError, match=msg): + first.intersection([1, 2, 3]) + + @pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") + def test_union_base(self, index): + index = index.unique() + first = index[3:] + second = index[:5] + everything = index + + union = first.union(second) + tm.assert_index_equal(union.sort_values(), everything.sort_values()) + + if isinstance(index.dtype, DatetimeTZDtype): + # The second.values below will drop tz, so the rest of this test + # is not applicable. + return + + # GH#10149 + cases = [second.to_numpy(), second.to_series(), second.to_list()] + for case in cases: + result = first.union(case) + assert equal_contents(result, everything) + + if isinstance(index, MultiIndex): + msg = "other must be a MultiIndex or a list of tuples" + with pytest.raises(TypeError, match=msg): + first.union([1, 2, 3]) + + @pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") + def test_difference_base(self, sort, index): + first = index[2:] + second = index[:4] + if index.inferred_type == "boolean": + # i think (TODO: be sure) there assumptions baked in about + # the index fixture that don't hold here? + answer = set(first).difference(set(second)) + elif isinstance(index, CategoricalIndex): + answer = [] + else: + answer = index[4:] + result = first.difference(second, sort) + assert equal_contents(result, answer) + + # GH#10149 + cases = [second.to_numpy(), second.to_series(), second.to_list()] + for case in cases: + result = first.difference(case, sort) + assert equal_contents(result, answer) + + if isinstance(index, MultiIndex): + msg = "other must be a MultiIndex or a list of tuples" + with pytest.raises(TypeError, match=msg): + first.difference([1, 2, 3], sort) + + @pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") + def test_symmetric_difference(self, index, using_infer_string, request): + if ( + using_infer_string + and index.dtype == "object" + and index.inferred_type == "string" + ): + request.applymarker(pytest.mark.xfail(reason="TODO: infer_string")) + if isinstance(index, CategoricalIndex): + pytest.skip(f"Not relevant for {type(index).__name__}") + if len(index) < 2: + pytest.skip("Too few values for test") + if index[0] in index[1:] or index[-1] in index[:-1]: + # index fixture has e.g. an index of bools that does not satisfy this, + # another with [0, 0, 1, 1, 2, 2] + pytest.skip("Index values no not satisfy test condition.") + + first = index[1:] + second = index[:-1] + answer = index[[0, -1]] + result = first.symmetric_difference(second) + tm.assert_index_equal(result.sort_values(), answer.sort_values()) + + # GH#10149 + cases = [second.to_numpy(), second.to_series(), second.to_list()] + for case in cases: + result = first.symmetric_difference(case) + assert equal_contents(result, answer) + + if isinstance(index, MultiIndex): + msg = "other must be a MultiIndex or a list of tuples" + with pytest.raises(TypeError, match=msg): + first.symmetric_difference([1, 2, 3]) + + @pytest.mark.parametrize( + "fname, sname, expected_name", + [ + ("A", "A", "A"), + ("A", "B", None), + ("A", None, None), + (None, "B", None), + (None, None, None), + ], + ) + def test_corner_union(self, index_flat, fname, sname, expected_name): + # GH#9943, GH#9862 + # Test unions with various name combinations + # Do not test MultiIndex or repeats + if not index_flat.is_unique: + index = index_flat.unique() + else: + index = index_flat + + # Test copy.union(copy) + first = index.copy().set_names(fname) + second = index.copy().set_names(sname) + union = first.union(second) + expected = index.copy().set_names(expected_name) + tm.assert_index_equal(union, expected) + + # Test copy.union(empty) + first = index.copy().set_names(fname) + second = index.drop(index).set_names(sname) + union = first.union(second) + expected = index.copy().set_names(expected_name) + tm.assert_index_equal(union, expected) + + # Test empty.union(copy) + first = index.drop(index).set_names(fname) + second = index.copy().set_names(sname) + union = first.union(second) + expected = index.copy().set_names(expected_name) + tm.assert_index_equal(union, expected) + + # Test empty.union(empty) + first = index.drop(index).set_names(fname) + second = index.drop(index).set_names(sname) + union = first.union(second) + expected = index.drop(index).set_names(expected_name) + tm.assert_index_equal(union, expected) + + @pytest.mark.parametrize( + "fname, sname, expected_name", + [ + ("A", "A", "A"), + ("A", "B", None), + ("A", None, None), + (None, "B", None), + (None, None, None), + ], + ) + def test_union_unequal(self, index_flat, fname, sname, expected_name): + if not index_flat.is_unique: + index = index_flat.unique() + else: + index = index_flat + + # test copy.union(subset) - need sort for unicode and string + first = index.copy().set_names(fname) + second = index[1:].set_names(sname) + union = first.union(second).sort_values() + expected = index.set_names(expected_name).sort_values() + tm.assert_index_equal(union, expected) + + @pytest.mark.parametrize( + "fname, sname, expected_name", + [ + ("A", "A", "A"), + ("A", "B", None), + ("A", None, None), + (None, "B", None), + (None, None, None), + ], + ) + def test_corner_intersect(self, index_flat, fname, sname, expected_name): + # GH#35847 + # Test intersections with various name combinations + if not index_flat.is_unique: + index = index_flat.unique() + else: + index = index_flat + + # Test copy.intersection(copy) + first = index.copy().set_names(fname) + second = index.copy().set_names(sname) + intersect = first.intersection(second) + expected = index.copy().set_names(expected_name) + tm.assert_index_equal(intersect, expected) + + # Test copy.intersection(empty) + first = index.copy().set_names(fname) + second = index.drop(index).set_names(sname) + intersect = first.intersection(second) + expected = index.drop(index).set_names(expected_name) + tm.assert_index_equal(intersect, expected) + + # Test empty.intersection(copy) + first = index.drop(index).set_names(fname) + second = index.copy().set_names(sname) + intersect = first.intersection(second) + expected = index.drop(index).set_names(expected_name) + tm.assert_index_equal(intersect, expected) + + # Test empty.intersection(empty) + first = index.drop(index).set_names(fname) + second = index.drop(index).set_names(sname) + intersect = first.intersection(second) + expected = index.drop(index).set_names(expected_name) + tm.assert_index_equal(intersect, expected) + + @pytest.mark.parametrize( + "fname, sname, expected_name", + [ + ("A", "A", "A"), + ("A", "B", None), + ("A", None, None), + (None, "B", None), + (None, None, None), + ], + ) + def test_intersect_unequal(self, index_flat, fname, sname, expected_name): + if not index_flat.is_unique: + index = index_flat.unique() + else: + index = index_flat + + # test copy.intersection(subset) - need sort for unicode and string + first = index.copy().set_names(fname) + second = index[1:].set_names(sname) + intersect = first.intersection(second).sort_values() + expected = index[1:].set_names(expected_name).sort_values() + tm.assert_index_equal(intersect, expected) + + @pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") + def test_intersection_name_retention_with_nameless(self, index): + if isinstance(index, MultiIndex): + index = index.rename(list(range(index.nlevels))) + else: + index = index.rename("foo") + + other = np.asarray(index) + + result = index.intersection(other) + assert result.name == index.name + + # empty other, same dtype + result = index.intersection(other[:0]) + assert result.name == index.name + + # empty `self` + result = index[:0].intersection(other) + assert result.name == index.name + + def test_difference_preserves_type_empty(self, index, sort): + # GH#20040 + # If taking difference of a set and itself, it + # needs to preserve the type of the index + if not index.is_unique: + pytest.skip("Not relevant since index is not unique") + result = index.difference(index, sort=sort) + expected = index[:0] + tm.assert_index_equal(result, expected, exact=True) + + def test_difference_name_retention_equals(self, index, names): + if isinstance(index, MultiIndex): + names = [[x] * index.nlevels for x in names] + index = index.rename(names[0]) + other = index.rename(names[1]) + + assert index.equals(other) + + result = index.difference(other) + expected = index[:0].rename(names[2]) + tm.assert_index_equal(result, expected) + + def test_intersection_difference_match_empty(self, index, sort): + # GH#20040 + # Test that the intersection of an index with an + # empty index produces the same index as the difference + # of an index with itself. Test for all types + if not index.is_unique: + pytest.skip("Not relevant because index is not unique") + inter = index.intersection(index[:0]) + diff = index.difference(index, sort=sort) + tm.assert_index_equal(inter, diff, exact=True) + + +@pytest.mark.filterwarnings("ignore:invalid value encountered in cast:RuntimeWarning") +@pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") +@pytest.mark.parametrize( + "method", ["intersection", "union", "difference", "symmetric_difference"] +) +def test_setop_with_categorical(index_flat, sort, method, using_infer_string): + # MultiIndex tested separately in tests.indexes.multi.test_setops + index = index_flat + + other = index.astype("category") + exact = "equiv" if isinstance(index, RangeIndex) else True + + result = getattr(index, method)(other, sort=sort) + expected = getattr(index, method)(index, sort=sort) + if ( + using_infer_string + and index.empty + and method in ("union", "symmetric_difference") + ): + expected = expected.astype("category") + tm.assert_index_equal(result, expected, exact=exact) + + result = getattr(index, method)(other[:5], sort=sort) + expected = getattr(index, method)(index[:5], sort=sort) + if ( + using_infer_string + and index.empty + and method in ("union", "symmetric_difference") + ): + expected = expected.astype("category") + tm.assert_index_equal(result, expected, exact=exact) + + +def test_intersection_duplicates_all_indexes(index): + # GH#38743 + if index.empty: + # No duplicates in empty indexes + pytest.skip("Not relevant for empty Index") + + idx = index + idx_non_unique = idx[[0, 0, 1, 2]] + + assert idx.intersection(idx_non_unique).equals(idx_non_unique.intersection(idx)) + assert idx.intersection(idx_non_unique).is_unique + + +def test_union_duplicate_index_subsets_of_each_other( + any_dtype_for_small_pos_integer_indexes, +): + # GH#31326 + dtype = any_dtype_for_small_pos_integer_indexes + a = Index([1, 2, 2, 3], dtype=dtype) + b = Index([3, 3, 4], dtype=dtype) + + expected = Index([1, 2, 2, 3, 3, 4], dtype=dtype) + if isinstance(a, CategoricalIndex): + expected = Index([1, 2, 2, 3, 3, 4]) + result = a.union(b) + tm.assert_index_equal(result, expected) + result = a.union(b, sort=False) + tm.assert_index_equal(result, expected) + + +def test_union_with_duplicate_index_and_non_monotonic( + any_dtype_for_small_pos_integer_indexes, +): + # GH#36289 + dtype = any_dtype_for_small_pos_integer_indexes + a = Index([1, 0, 0], dtype=dtype) + b = Index([0, 1], dtype=dtype) + expected = Index([0, 0, 1], dtype=dtype) + + result = a.union(b) + tm.assert_index_equal(result, expected) + + result = b.union(a) + tm.assert_index_equal(result, expected) + + +def test_union_duplicate_index_different_dtypes(): + # GH#36289 + a = Index([1, 2, 2, 3]) + b = Index(["1", "0", "0"]) + expected = Index([1, 2, 2, 3, "1", "0", "0"]) + result = a.union(b, sort=False) + tm.assert_index_equal(result, expected) + + +def test_union_same_value_duplicated_in_both(): + # GH#36289 + a = Index([0, 0, 1]) + b = Index([0, 0, 1, 2]) + result = a.union(b) + expected = Index([0, 0, 1, 2]) + tm.assert_index_equal(result, expected) + + +@pytest.mark.parametrize("dup", [1, np.nan]) +def test_union_nan_in_both(dup): + # GH#36289 + a = Index([np.nan, 1, 2, 2]) + b = Index([np.nan, dup, 1, 2]) + result = a.union(b, sort=False) + expected = Index([np.nan, dup, 1.0, 2.0, 2.0]) + tm.assert_index_equal(result, expected) + + +def test_union_rangeindex_sort_true(): + # GH 53490 + idx1 = RangeIndex(1, 100, 6) + idx2 = RangeIndex(1, 50, 3) + result = idx1.union(idx2, sort=True) + expected = Index( + [ + 1, + 4, + 7, + 10, + 13, + 16, + 19, + 22, + 25, + 28, + 31, + 34, + 37, + 40, + 43, + 46, + 49, + 55, + 61, + 67, + 73, + 79, + 85, + 91, + 97, + ] + ) + tm.assert_index_equal(result, expected) + + +def test_union_with_duplicate_index_not_subset_and_non_monotonic( + any_dtype_for_small_pos_integer_indexes, +): + # GH#36289 + dtype = any_dtype_for_small_pos_integer_indexes + a = Index([1, 0, 2], dtype=dtype) + b = Index([0, 0, 1], dtype=dtype) + expected = Index([0, 0, 1, 2], dtype=dtype) + if isinstance(a, CategoricalIndex): + expected = Index([0, 0, 1, 2]) + + result = a.union(b) + tm.assert_index_equal(result, expected) + + result = b.union(a) + tm.assert_index_equal(result, expected) + + +def test_union_int_categorical_with_nan(): + ci = CategoricalIndex([1, 2, np.nan]) + assert ci.categories.dtype.kind == "i" + + idx = Index([1, 2]) + + result = idx.union(ci) + expected = Index([1, 2, np.nan], dtype=np.float64) + tm.assert_index_equal(result, expected) + + result = ci.union(idx) + tm.assert_index_equal(result, expected) + + +class TestSetOpsUnsorted: + # These may eventually belong in a dtype-specific test_setops, or + # parametrized over a more general fixture + def test_intersect_str_dates(self): + dt_dates = [datetime(2012, 2, 9), datetime(2012, 2, 22)] + + index1 = Index(dt_dates, dtype=object) + index2 = Index(["aa"], dtype=object) + result = index2.intersection(index1) + + expected = Index([], dtype=object) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("index", ["string"], indirect=True) + def test_intersection(self, index, sort): + first = index[:20] + second = index[:10] + intersect = first.intersection(second, sort=sort) + if sort in (None, False): + tm.assert_index_equal(intersect.sort_values(), second.sort_values()) + else: + tm.assert_index_equal(intersect, second) + + # Corner cases + inter = first.intersection(first, sort=sort) + assert inter is first + + @pytest.mark.parametrize( + "index2,keeps_name", + [ + (Index([3, 4, 5, 6, 7], name="index"), True), # preserve same name + (Index([3, 4, 5, 6, 7], name="other"), False), # drop diff names + (Index([3, 4, 5, 6, 7]), False), + ], + ) + def test_intersection_name_preservation(self, index2, keeps_name, sort): + index1 = Index([1, 2, 3, 4, 5], name="index") + expected = Index([3, 4, 5]) + result = index1.intersection(index2, sort) + + if keeps_name: + expected.name = "index" + + assert result.name == expected.name + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("index", ["string"], indirect=True) + @pytest.mark.parametrize( + "first_name,second_name,expected_name", + [("A", "A", "A"), ("A", "B", None), (None, "B", None)], + ) + def test_intersection_name_preservation2( + self, index, first_name, second_name, expected_name, sort + ): + first = index[5:20] + second = index[:10] + first.name = first_name + second.name = second_name + intersect = first.intersection(second, sort=sort) + assert intersect.name == expected_name + + def test_chained_union(self, sort): + # Chained unions handles names correctly + i1 = Index([1, 2], name="i1") + i2 = Index([5, 6], name="i2") + i3 = Index([3, 4], name="i3") + union = i1.union(i2.union(i3, sort=sort), sort=sort) + expected = i1.union(i2, sort=sort).union(i3, sort=sort) + tm.assert_index_equal(union, expected) + + j1 = Index([1, 2], name="j1") + j2 = Index([], name="j2") + j3 = Index([], name="j3") + union = j1.union(j2.union(j3, sort=sort), sort=sort) + expected = j1.union(j2, sort=sort).union(j3, sort=sort) + tm.assert_index_equal(union, expected) + + @pytest.mark.parametrize("index", ["string"], indirect=True) + def test_union(self, index, sort): + first = index[5:20] + second = index[:10] + everything = index[:20] + + union = first.union(second, sort=sort) + if sort in (None, False): + tm.assert_index_equal(union.sort_values(), everything.sort_values()) + else: + tm.assert_index_equal(union, everything) + + @pytest.mark.parametrize("klass", [np.array, Series, list]) + @pytest.mark.parametrize("index", ["string"], indirect=True) + def test_union_from_iterables(self, index, klass, sort): + # GH#10149 + first = index[5:20] + second = index[:10] + everything = index[:20] + + case = klass(second.values) + result = first.union(case, sort=sort) + if sort in (None, False): + tm.assert_index_equal(result.sort_values(), everything.sort_values()) + else: + tm.assert_index_equal(result, everything) + + @pytest.mark.parametrize("index", ["string"], indirect=True) + def test_union_identity(self, index, sort): + first = index[5:20] + + union = first.union(first, sort=sort) + # i.e. identity is not preserved when sort is True + assert (union is first) is (not sort) + + # This should no longer be the same object, since [] is not consistent, + # both objects will be recast to dtype('O') + union = first.union(Index([], dtype=first.dtype), sort=sort) + assert (union is first) is (not sort) + + union = Index([], dtype=first.dtype).union(first, sort=sort) + assert (union is first) is (not sort) + + @pytest.mark.parametrize("index", ["string"], indirect=True) + @pytest.mark.parametrize("second_name,expected", [(None, None), ("name", "name")]) + def test_difference_name_preservation(self, index, second_name, expected, sort): + first = index[5:20] + second = index[:10] + answer = index[10:20] + + first.name = "name" + second.name = second_name + result = first.difference(second, sort=sort) + + if sort is True: + tm.assert_index_equal(result, answer) + else: + answer.name = second_name + tm.assert_index_equal(result.sort_values(), answer.sort_values()) + + if expected is None: + assert result.name is None + else: + assert result.name == expected + + def test_difference_empty_arg(self, index, sort): + first = index.copy() + first = first[5:20] + first.name = "name" + result = first.difference([], sort) + expected = index[5:20].unique() + expected.name = "name" + tm.assert_index_equal(result, expected) + + def test_difference_should_not_compare(self): + # GH 55113 + left = Index([1, 1]) + right = Index([True]) + result = left.difference(right) + expected = Index([1]) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("index", ["string"], indirect=True) + def test_difference_identity(self, index, sort): + first = index[5:20] + first.name = "name" + result = first.difference(first, sort) + + assert len(result) == 0 + assert result.name == first.name + + @pytest.mark.parametrize("index", ["string"], indirect=True) + def test_difference_sort(self, index, sort): + first = index[5:20] + second = index[:10] + + result = first.difference(second, sort) + expected = index[10:20] + + if sort is None: + expected = expected.sort_values() + + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("opname", ["difference", "symmetric_difference"]) + def test_difference_incomparable(self, opname): + a = Index([3, Timestamp("2000"), 1]) + b = Index([2, Timestamp("1999"), 1]) + op = operator.methodcaller(opname, b) + + with tm.assert_produces_warning(RuntimeWarning): + # sort=None, the default + result = op(a) + expected = Index([3, Timestamp("2000"), 2, Timestamp("1999")]) + if opname == "difference": + expected = expected[:2] + tm.assert_index_equal(result, expected) + + # sort=False + op = operator.methodcaller(opname, b, sort=False) + result = op(a) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("opname", ["difference", "symmetric_difference"]) + def test_difference_incomparable_true(self, opname): + a = Index([3, Timestamp("2000"), 1]) + b = Index([2, Timestamp("1999"), 1]) + op = operator.methodcaller(opname, b, sort=True) + + msg = "'<' not supported between instances of 'Timestamp' and 'int'" + with pytest.raises(TypeError, match=msg): + op(a) + + def test_symmetric_difference_mi(self, sort): + index1 = MultiIndex.from_tuples(zip(["foo", "bar", "baz"], [1, 2, 3])) + index2 = MultiIndex.from_tuples([("foo", 1), ("bar", 3)]) + result = index1.symmetric_difference(index2, sort=sort) + expected = MultiIndex.from_tuples([("bar", 2), ("baz", 3), ("bar", 3)]) + if sort is None: + expected = expected.sort_values() + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "index2,expected", + [ + (Index([0, 1, np.nan]), Index([2.0, 3.0, 0.0])), + (Index([0, 1]), Index([np.nan, 2.0, 3.0, 0.0])), + ], + ) + def test_symmetric_difference_missing(self, index2, expected, sort): + # GH#13514 change: {nan} - {nan} == {} + # (GH#6444, sorting of nans, is no longer an issue) + index1 = Index([1, np.nan, 2, 3]) + + result = index1.symmetric_difference(index2, sort=sort) + if sort is None: + expected = expected.sort_values() + tm.assert_index_equal(result, expected) + + def test_symmetric_difference_non_index(self, sort): + index1 = Index([1, 2, 3, 4], name="index1") + index2 = np.array([2, 3, 4, 5]) + expected = Index([1, 5], name="index1") + result = index1.symmetric_difference(index2, sort=sort) + if sort in (None, True): + tm.assert_index_equal(result, expected) + else: + tm.assert_index_equal(result.sort_values(), expected) + assert result.name == "index1" + + result = index1.symmetric_difference(index2, result_name="new_name", sort=sort) + expected.name = "new_name" + if sort in (None, True): + tm.assert_index_equal(result, expected) + else: + tm.assert_index_equal(result.sort_values(), expected) + assert result.name == "new_name" + + def test_union_ea_dtypes(self, any_numeric_ea_and_arrow_dtype): + # GH#51365 + idx = Index([1, 2, 3], dtype=any_numeric_ea_and_arrow_dtype) + idx2 = Index([3, 4, 5], dtype=any_numeric_ea_and_arrow_dtype) + result = idx.union(idx2) + expected = Index([1, 2, 3, 4, 5], dtype=any_numeric_ea_and_arrow_dtype) + tm.assert_index_equal(result, expected) + + def test_union_string_array(self, any_string_dtype): + idx1 = Index(["a"], dtype=any_string_dtype) + idx2 = Index(["b"], dtype=any_string_dtype) + result = idx1.union(idx2) + expected = Index(["a", "b"], dtype=any_string_dtype) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_subclass.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_subclass.py new file mode 100644 index 0000000000000000000000000000000000000000..c3287e1ddcddcedc14857f2299798d3957830921 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/test_subclass.py @@ -0,0 +1,40 @@ +""" +Tests involving custom Index subclasses +""" +import numpy as np + +from pandas import ( + DataFrame, + Index, +) +import pandas._testing as tm + + +class CustomIndex(Index): + def __new__(cls, data, name=None): + # assert that this index class cannot hold strings + if any(isinstance(val, str) for val in data): + raise TypeError("CustomIndex cannot hold strings") + + if name is None and hasattr(data, "name"): + name = data.name + data = np.array(data, dtype="O") + + return cls._simple_new(data, name) + + +def test_insert_fallback_to_base_index(): + # https://github.com/pandas-dev/pandas/issues/47071 + + idx = CustomIndex([1, 2, 3]) + result = idx.insert(0, "string") + expected = Index(["string", 1, 2, 3], dtype=object) + tm.assert_index_equal(result, expected) + + df = DataFrame( + np.random.default_rng(2).standard_normal((2, 3)), + columns=idx, + index=Index([1, 2], name="string"), + ) + result = df.reset_index() + tm.assert_index_equal(result.columns, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/methods/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/methods/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/methods/test_astype.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/methods/test_astype.py new file mode 100644 index 0000000000000000000000000000000000000000..5166cadae499e44a6dff420580c96043569b839b --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/methods/test_astype.py @@ -0,0 +1,181 @@ +from datetime import timedelta + +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + Index, + NaT, + Timedelta, + TimedeltaIndex, + timedelta_range, +) +import pandas._testing as tm +from pandas.core.arrays import TimedeltaArray + + +class TestTimedeltaIndex: + def test_astype_object(self): + idx = timedelta_range(start="1 days", periods=4, freq="D", name="idx") + expected_list = [ + Timedelta("1 days"), + Timedelta("2 days"), + Timedelta("3 days"), + Timedelta("4 days"), + ] + result = idx.astype(object) + expected = Index(expected_list, dtype=object, name="idx") + tm.assert_index_equal(result, expected) + assert idx.tolist() == expected_list + + def test_astype_object_with_nat(self): + idx = TimedeltaIndex( + [timedelta(days=1), timedelta(days=2), NaT, timedelta(days=4)], name="idx" + ) + expected_list = [ + Timedelta("1 days"), + Timedelta("2 days"), + NaT, + Timedelta("4 days"), + ] + result = idx.astype(object) + expected = Index(expected_list, dtype=object, name="idx") + tm.assert_index_equal(result, expected) + assert idx.tolist() == expected_list + + def test_astype(self, using_infer_string): + # GH 13149, GH 13209 + idx = TimedeltaIndex([1e14, "NaT", NaT, np.nan], name="idx") + + result = idx.astype(object) + expected = Index( + [Timedelta("1 days 03:46:40")] + [NaT] * 3, dtype=object, name="idx" + ) + tm.assert_index_equal(result, expected) + + result = idx.astype(np.int64) + expected = Index( + [100000000000000] + [-9223372036854775808] * 3, dtype=np.int64, name="idx" + ) + tm.assert_index_equal(result, expected) + + result = idx.astype(str) + if using_infer_string: + expected = Index( + [str(x) if x is not NaT else None for x in idx], name="idx", dtype="str" + ) + else: + expected = Index([str(x) for x in idx], name="idx", dtype=object) + tm.assert_index_equal(result, expected) + + rng = timedelta_range("1 days", periods=10) + result = rng.astype("i8") + tm.assert_index_equal(result, Index(rng.asi8)) + tm.assert_numpy_array_equal(rng.asi8, result.values) + + def test_astype_uint(self): + arr = timedelta_range("1h", periods=2) + + with pytest.raises(TypeError, match=r"Do obj.astype\('int64'\)"): + arr.astype("uint64") + with pytest.raises(TypeError, match=r"Do obj.astype\('int64'\)"): + arr.astype("uint32") + + def test_astype_timedelta64(self): + # GH 13149, GH 13209 + idx = TimedeltaIndex([1e14, "NaT", NaT, np.nan]) + + msg = ( + r"Cannot convert from timedelta64\[ns\] to timedelta64. " + "Supported resolutions are 's', 'ms', 'us', 'ns'" + ) + with pytest.raises(ValueError, match=msg): + idx.astype("timedelta64") + + result = idx.astype("timedelta64[ns]") + tm.assert_index_equal(result, idx) + assert result is not idx + + result = idx.astype("timedelta64[ns]", copy=False) + tm.assert_index_equal(result, idx) + assert result is idx + + def test_astype_to_td64d_raises(self, index_or_series): + # We don't support "D" reso + scalar = Timedelta(days=31) + td = index_or_series( + [scalar, scalar, scalar + timedelta(minutes=5, seconds=3), NaT], + dtype="m8[ns]", + ) + msg = ( + r"Cannot convert from timedelta64\[ns\] to timedelta64\[D\]. " + "Supported resolutions are 's', 'ms', 'us', 'ns'" + ) + with pytest.raises(ValueError, match=msg): + td.astype("timedelta64[D]") + + def test_astype_ms_to_s(self, index_or_series): + scalar = Timedelta(days=31) + td = index_or_series( + [scalar, scalar, scalar + timedelta(minutes=5, seconds=3), NaT], + dtype="m8[ns]", + ) + + exp_values = np.asarray(td).astype("m8[s]") + exp_tda = TimedeltaArray._simple_new(exp_values, dtype=exp_values.dtype) + expected = index_or_series(exp_tda) + assert expected.dtype == "m8[s]" + result = td.astype("timedelta64[s]") + tm.assert_equal(result, expected) + + def test_astype_freq_conversion(self): + # pre-2.0 td64 astype converted to float64. now for supported units + # (s, ms, us, ns) this converts to the requested dtype. + # This matches TDA and Series + tdi = timedelta_range("1 Day", periods=30) + + res = tdi.astype("m8[s]") + exp_values = np.asarray(tdi).astype("m8[s]") + exp_tda = TimedeltaArray._simple_new( + exp_values, dtype=exp_values.dtype, freq=tdi.freq + ) + expected = Index(exp_tda) + assert expected.dtype == "m8[s]" + tm.assert_index_equal(res, expected) + + # check this matches Series and TimedeltaArray + res = tdi._data.astype("m8[s]") + tm.assert_equal(res, expected._values) + + res = tdi.to_series().astype("m8[s]") + tm.assert_equal(res._values, expected._values._with_freq(None)) + + @pytest.mark.parametrize("dtype", [float, "datetime64", "datetime64[ns]"]) + def test_astype_raises(self, dtype): + # GH 13149, GH 13209 + idx = TimedeltaIndex([1e14, "NaT", NaT, np.nan]) + msg = "Cannot cast TimedeltaIndex to dtype" + with pytest.raises(TypeError, match=msg): + idx.astype(dtype) + + def test_astype_category(self): + obj = timedelta_range("1h", periods=2, freq="h") + + result = obj.astype("category") + expected = pd.CategoricalIndex([Timedelta("1h"), Timedelta("2h")]) + tm.assert_index_equal(result, expected) + + result = obj._data.astype("category") + expected = expected.values + tm.assert_categorical_equal(result, expected) + + def test_astype_array_fallback(self): + obj = timedelta_range("1h", periods=2) + result = obj.astype(bool) + expected = Index(np.array([True, True])) + tm.assert_index_equal(result, expected) + + result = obj._data.astype(bool) + expected = np.array([True, True]) + tm.assert_numpy_array_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/methods/test_factorize.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/methods/test_factorize.py new file mode 100644 index 0000000000000000000000000000000000000000..24ab3888412d08b54543ed22910c67ce9bdf328f --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/methods/test_factorize.py @@ -0,0 +1,40 @@ +import numpy as np + +from pandas import ( + TimedeltaIndex, + factorize, + timedelta_range, +) +import pandas._testing as tm + + +class TestTimedeltaIndexFactorize: + def test_factorize(self): + idx1 = TimedeltaIndex(["1 day", "1 day", "2 day", "2 day", "3 day", "3 day"]) + + exp_arr = np.array([0, 0, 1, 1, 2, 2], dtype=np.intp) + exp_idx = TimedeltaIndex(["1 day", "2 day", "3 day"]) + + arr, idx = idx1.factorize() + tm.assert_numpy_array_equal(arr, exp_arr) + tm.assert_index_equal(idx, exp_idx) + assert idx.freq == exp_idx.freq + + arr, idx = idx1.factorize(sort=True) + tm.assert_numpy_array_equal(arr, exp_arr) + tm.assert_index_equal(idx, exp_idx) + assert idx.freq == exp_idx.freq + + def test_factorize_preserves_freq(self): + # GH#38120 freq should be preserved + idx3 = timedelta_range("1 day", periods=4, freq="s") + exp_arr = np.array([0, 1, 2, 3], dtype=np.intp) + arr, idx = idx3.factorize() + tm.assert_numpy_array_equal(arr, exp_arr) + tm.assert_index_equal(idx, idx3) + assert idx.freq == idx3.freq + + arr, idx = factorize(idx3) + tm.assert_numpy_array_equal(arr, exp_arr) + tm.assert_index_equal(idx, idx3) + assert idx.freq == idx3.freq diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/methods/test_fillna.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/methods/test_fillna.py new file mode 100644 index 0000000000000000000000000000000000000000..40aa95d0a46058d2dc3fc5208ca39328d96b23fb --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/methods/test_fillna.py @@ -0,0 +1,22 @@ +from pandas import ( + Index, + NaT, + Timedelta, + TimedeltaIndex, +) +import pandas._testing as tm + + +class TestFillNA: + def test_fillna_timedelta(self): + # GH#11343 + idx = TimedeltaIndex(["1 day", NaT, "3 day"]) + + exp = TimedeltaIndex(["1 day", "2 day", "3 day"]) + tm.assert_index_equal(idx.fillna(Timedelta("2 day")), exp) + + exp = TimedeltaIndex(["1 day", "3 hour", "3 day"]) + idx.fillna(Timedelta("3 hour")) + + exp = Index([Timedelta("1 day"), "x", Timedelta("3 day")], dtype=object) + tm.assert_index_equal(idx.fillna("x"), exp) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/methods/test_insert.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/methods/test_insert.py new file mode 100644 index 0000000000000000000000000000000000000000..f8164102815f61ec61962524db2a2b3dd0ff6d55 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/methods/test_insert.py @@ -0,0 +1,145 @@ +from datetime import timedelta + +import numpy as np +import pytest + +from pandas._libs import lib + +import pandas as pd +from pandas import ( + Index, + Timedelta, + TimedeltaIndex, + timedelta_range, +) +import pandas._testing as tm + + +class TestTimedeltaIndexInsert: + def test_insert(self): + idx = TimedeltaIndex(["4day", "1day", "2day"], name="idx") + + result = idx.insert(2, timedelta(days=5)) + exp = TimedeltaIndex(["4day", "1day", "5day", "2day"], name="idx") + tm.assert_index_equal(result, exp) + + # insertion of non-datetime should coerce to object index + result = idx.insert(1, "inserted") + expected = Index( + [Timedelta("4day"), "inserted", Timedelta("1day"), Timedelta("2day")], + name="idx", + ) + assert not isinstance(result, TimedeltaIndex) + tm.assert_index_equal(result, expected) + assert result.name == expected.name + + idx = timedelta_range("1day 00:00:01", periods=3, freq="s", name="idx") + + # preserve freq + expected_0 = TimedeltaIndex( + ["1day", "1day 00:00:01", "1day 00:00:02", "1day 00:00:03"], + name="idx", + freq="s", + ) + expected_3 = TimedeltaIndex( + ["1day 00:00:01", "1day 00:00:02", "1day 00:00:03", "1day 00:00:04"], + name="idx", + freq="s", + ) + + # reset freq to None + expected_1_nofreq = TimedeltaIndex( + ["1day 00:00:01", "1day 00:00:01", "1day 00:00:02", "1day 00:00:03"], + name="idx", + freq=None, + ) + expected_3_nofreq = TimedeltaIndex( + ["1day 00:00:01", "1day 00:00:02", "1day 00:00:03", "1day 00:00:05"], + name="idx", + freq=None, + ) + + cases = [ + (0, Timedelta("1day"), expected_0), + (-3, Timedelta("1day"), expected_0), + (3, Timedelta("1day 00:00:04"), expected_3), + (1, Timedelta("1day 00:00:01"), expected_1_nofreq), + (3, Timedelta("1day 00:00:05"), expected_3_nofreq), + ] + + for n, d, expected in cases: + result = idx.insert(n, d) + tm.assert_index_equal(result, expected) + assert result.name == expected.name + assert result.freq == expected.freq + + @pytest.mark.parametrize( + "null", [None, np.nan, np.timedelta64("NaT"), pd.NaT, pd.NA] + ) + def test_insert_nat(self, null): + # GH 18295 (test missing) + idx = timedelta_range("1day", "3day") + result = idx.insert(1, null) + expected = TimedeltaIndex(["1day", pd.NaT, "2day", "3day"]) + tm.assert_index_equal(result, expected) + + def test_insert_invalid_na(self): + idx = TimedeltaIndex(["4day", "1day", "2day"], name="idx") + + item = np.datetime64("NaT") + result = idx.insert(0, item) + + expected = Index([item] + list(idx), dtype=object, name="idx") + tm.assert_index_equal(result, expected) + + # Also works if we pass a different dt64nat object + item2 = np.datetime64("NaT") + result = idx.insert(0, item2) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "item", [0, np.int64(0), np.float64(0), np.array(0), np.datetime64(456, "us")] + ) + def test_insert_mismatched_types_raises(self, item): + # GH#33703 dont cast these to td64 + tdi = TimedeltaIndex(["4day", "1day", "2day"], name="idx") + + result = tdi.insert(1, item) + + expected = Index( + [tdi[0], lib.item_from_zerodim(item)] + list(tdi[1:]), + dtype=object, + name="idx", + ) + tm.assert_index_equal(result, expected) + + def test_insert_castable_str(self): + idx = timedelta_range("1day", "3day") + + result = idx.insert(0, "1 Day") + + expected = TimedeltaIndex([idx[0]] + list(idx)) + tm.assert_index_equal(result, expected) + + def test_insert_non_castable_str(self): + idx = timedelta_range("1day", "3day") + + result = idx.insert(0, "foo") + + expected = Index(["foo"] + list(idx), dtype=object) + tm.assert_index_equal(result, expected) + + def test_insert_empty(self): + # Corner case inserting with length zero doesn't raise IndexError + # GH#33573 for freq preservation + idx = timedelta_range("1 Day", periods=3) + td = idx[0] + + result = idx[:0].insert(0, td) + assert result.freq == "D" + + with pytest.raises(IndexError, match="loc must be an integer between"): + result = idx[:0].insert(1, td) + + with pytest.raises(IndexError, match="loc must be an integer between"): + result = idx[:0].insert(-1, td) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/methods/test_repeat.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/methods/test_repeat.py new file mode 100644 index 0000000000000000000000000000000000000000..2a9b58d1bf322938e9344d0cbacfaa79674fcf0e --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/methods/test_repeat.py @@ -0,0 +1,34 @@ +import numpy as np + +from pandas import ( + TimedeltaIndex, + timedelta_range, +) +import pandas._testing as tm + + +class TestRepeat: + def test_repeat(self): + index = timedelta_range("1 days", periods=2, freq="D") + exp = TimedeltaIndex(["1 days", "1 days", "2 days", "2 days"]) + for res in [index.repeat(2), np.repeat(index, 2)]: + tm.assert_index_equal(res, exp) + assert res.freq is None + + index = TimedeltaIndex(["1 days", "NaT", "3 days"]) + exp = TimedeltaIndex( + [ + "1 days", + "1 days", + "1 days", + "NaT", + "NaT", + "NaT", + "3 days", + "3 days", + "3 days", + ] + ) + for res in [index.repeat(3), np.repeat(index, 3)]: + tm.assert_index_equal(res, exp) + assert res.freq is None diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/methods/test_shift.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/methods/test_shift.py new file mode 100644 index 0000000000000000000000000000000000000000..a0986d1496881a2061ac8306d0a064f4393cd4e9 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/methods/test_shift.py @@ -0,0 +1,76 @@ +import pytest + +from pandas.errors import NullFrequencyError + +import pandas as pd +from pandas import TimedeltaIndex +import pandas._testing as tm + + +class TestTimedeltaIndexShift: + # ------------------------------------------------------------- + # TimedeltaIndex.shift is used by __add__/__sub__ + + def test_tdi_shift_empty(self): + # GH#9903 + idx = TimedeltaIndex([], name="xxx") + tm.assert_index_equal(idx.shift(0, freq="h"), idx) + tm.assert_index_equal(idx.shift(3, freq="h"), idx) + + def test_tdi_shift_hours(self): + # GH#9903 + idx = TimedeltaIndex(["5 hours", "6 hours", "9 hours"], name="xxx") + tm.assert_index_equal(idx.shift(0, freq="h"), idx) + exp = TimedeltaIndex(["8 hours", "9 hours", "12 hours"], name="xxx") + tm.assert_index_equal(idx.shift(3, freq="h"), exp) + exp = TimedeltaIndex(["2 hours", "3 hours", "6 hours"], name="xxx") + tm.assert_index_equal(idx.shift(-3, freq="h"), exp) + + def test_tdi_shift_minutes(self): + # GH#9903 + idx = TimedeltaIndex(["5 hours", "6 hours", "9 hours"], name="xxx") + tm.assert_index_equal(idx.shift(0, freq="min"), idx) + exp = TimedeltaIndex(["05:03:00", "06:03:00", "9:03:00"], name="xxx") + tm.assert_index_equal(idx.shift(3, freq="min"), exp) + exp = TimedeltaIndex(["04:57:00", "05:57:00", "8:57:00"], name="xxx") + tm.assert_index_equal(idx.shift(-3, freq="min"), exp) + + def test_tdi_shift_int(self): + # GH#8083 + tdi = pd.to_timedelta(range(5), unit="d") + trange = tdi._with_freq("infer") + pd.offsets.Hour(1) + result = trange.shift(1) + expected = TimedeltaIndex( + [ + "1 days 01:00:00", + "2 days 01:00:00", + "3 days 01:00:00", + "4 days 01:00:00", + "5 days 01:00:00", + ], + freq="D", + ) + tm.assert_index_equal(result, expected) + + def test_tdi_shift_nonstandard_freq(self): + # GH#8083 + tdi = pd.to_timedelta(range(5), unit="d") + trange = tdi._with_freq("infer") + pd.offsets.Hour(1) + result = trange.shift(3, freq="2D 1s") + expected = TimedeltaIndex( + [ + "6 days 01:00:03", + "7 days 01:00:03", + "8 days 01:00:03", + "9 days 01:00:03", + "10 days 01:00:03", + ], + freq="D", + ) + tm.assert_index_equal(result, expected) + + def test_shift_no_freq(self): + # GH#19147 + tdi = TimedeltaIndex(["1 days 01:00:00", "2 days 01:00:00"], freq=None) + with pytest.raises(NullFrequencyError, match="Cannot shift with no freq"): + tdi.shift(2) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_arithmetic.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_arithmetic.py new file mode 100644 index 0000000000000000000000000000000000000000..a431e10dc18ab15da0fd07f798d54b6dead26073 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_arithmetic.py @@ -0,0 +1,51 @@ +# Arithmetic tests for TimedeltaIndex are generally about the result's `freq` attribute. +# Other cases can be shared in tests.arithmetic.test_timedelta64 +import numpy as np + +from pandas import ( + NaT, + Timedelta, + timedelta_range, +) +import pandas._testing as tm + + +class TestTimedeltaIndexArithmetic: + def test_arithmetic_zero_freq(self): + # GH#51575 don't get a .freq with freq.n = 0 + tdi = timedelta_range(0, periods=100, freq="ns") + result = tdi / 2 + assert result.freq is None + expected = tdi[:50].repeat(2) + tm.assert_index_equal(result, expected) + + result2 = tdi // 2 + assert result2.freq is None + expected2 = expected + tm.assert_index_equal(result2, expected2) + + result3 = tdi * 0 + assert result3.freq is None + expected3 = tdi[:1].repeat(100) + tm.assert_index_equal(result3, expected3) + + def test_tdi_division(self, index_or_series): + # doc example + + scalar = Timedelta(days=31) + td = index_or_series( + [scalar, scalar, scalar + Timedelta(minutes=5, seconds=3), NaT], + dtype="m8[ns]", + ) + + result = td / np.timedelta64(1, "D") + expected = index_or_series( + [31, 31, (31 * 86400 + 5 * 60 + 3) / 86400.0, np.nan] + ) + tm.assert_equal(result, expected) + + result = td / np.timedelta64(1, "s") + expected = index_or_series( + [31 * 86400, 31 * 86400, 31 * 86400 + 5 * 60 + 3, np.nan] + ) + tm.assert_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_constructors.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_constructors.py new file mode 100644 index 0000000000000000000000000000000000000000..0510700bb64d7a626761a67d72ecfa6ecfba9ac4 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_constructors.py @@ -0,0 +1,291 @@ +from datetime import timedelta + +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + Timedelta, + TimedeltaIndex, + timedelta_range, + to_timedelta, +) +import pandas._testing as tm +from pandas.core.arrays.timedeltas import TimedeltaArray + + +class TestTimedeltaIndex: + def test_closed_deprecated(self): + # GH#52628 + msg = "The 'closed' keyword" + with tm.assert_produces_warning(FutureWarning, match=msg): + TimedeltaIndex([], closed=True) + + def test_array_of_dt64_nat_raises(self): + # GH#39462 + nat = np.datetime64("NaT", "ns") + arr = np.array([nat], dtype=object) + + msg = "Invalid type for timedelta scalar" + with pytest.raises(TypeError, match=msg): + TimedeltaIndex(arr) + + with pytest.raises(TypeError, match=msg): + TimedeltaArray._from_sequence(arr, dtype="m8[ns]") + + with pytest.raises(TypeError, match=msg): + to_timedelta(arr) + + @pytest.mark.parametrize("unit", ["Y", "y", "M"]) + def test_unit_m_y_raises(self, unit): + msg = "Units 'M', 'Y', and 'y' are no longer supported" + depr_msg = "The 'unit' keyword in TimedeltaIndex construction is deprecated" + with pytest.raises(ValueError, match=msg): + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + TimedeltaIndex([1, 3, 7], unit) + + def test_int64_nocopy(self): + # GH#23539 check that a copy isn't made when we pass int64 data + # and copy=False + arr = np.arange(10, dtype=np.int64) + tdi = TimedeltaIndex(arr, copy=False) + assert tdi._data._ndarray.base is arr + + def test_infer_from_tdi(self): + # GH#23539 + # fast-path for inferring a frequency if the passed data already + # has one + tdi = timedelta_range("1 second", periods=10**7, freq="1s") + + result = TimedeltaIndex(tdi, freq="infer") + assert result.freq == tdi.freq + + # check that inferred_freq was not called by checking that the + # value has not been cached + assert "inferred_freq" not in getattr(result, "_cache", {}) + + def test_infer_from_tdi_mismatch(self): + # GH#23539 + # fast-path for invalidating a frequency if the passed data already + # has one and it does not match the `freq` input + tdi = timedelta_range("1 second", periods=100, freq="1s") + + depr_msg = "TimedeltaArray.__init__ is deprecated" + msg = ( + "Inferred frequency .* from passed values does " + "not conform to passed frequency" + ) + with pytest.raises(ValueError, match=msg): + TimedeltaIndex(tdi, freq="D") + + with pytest.raises(ValueError, match=msg): + # GH#23789 + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + TimedeltaArray(tdi, freq="D") + + with pytest.raises(ValueError, match=msg): + TimedeltaIndex(tdi._data, freq="D") + + with pytest.raises(ValueError, match=msg): + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + TimedeltaArray(tdi._data, freq="D") + + def test_dt64_data_invalid(self): + # GH#23539 + # passing tz-aware DatetimeIndex raises, naive or ndarray[datetime64] + # raise as of GH#29794 + dti = pd.date_range("2016-01-01", periods=3) + + msg = "cannot be converted to timedelta64" + with pytest.raises(TypeError, match=msg): + TimedeltaIndex(dti.tz_localize("Europe/Brussels")) + + with pytest.raises(TypeError, match=msg): + TimedeltaIndex(dti) + + with pytest.raises(TypeError, match=msg): + TimedeltaIndex(np.asarray(dti)) + + def test_float64_ns_rounded(self): + # GH#23539 without specifying a unit, floats are regarded as nanos, + # and fractional portions are truncated + tdi = TimedeltaIndex([2.3, 9.7]) + expected = TimedeltaIndex([2, 9]) + tm.assert_index_equal(tdi, expected) + + # integral floats are non-lossy + tdi = TimedeltaIndex([2.0, 9.0]) + expected = TimedeltaIndex([2, 9]) + tm.assert_index_equal(tdi, expected) + + # NaNs get converted to NaT + tdi = TimedeltaIndex([2.0, np.nan]) + expected = TimedeltaIndex([Timedelta(nanoseconds=2), pd.NaT]) + tm.assert_index_equal(tdi, expected) + + def test_float64_unit_conversion(self): + # GH#23539 + tdi = to_timedelta([1.5, 2.25], unit="D") + expected = TimedeltaIndex([Timedelta(days=1.5), Timedelta(days=2.25)]) + tm.assert_index_equal(tdi, expected) + + def test_construction_base_constructor(self): + arr = [Timedelta("1 days"), pd.NaT, Timedelta("3 days")] + tm.assert_index_equal(pd.Index(arr), TimedeltaIndex(arr)) + tm.assert_index_equal(pd.Index(np.array(arr)), TimedeltaIndex(np.array(arr))) + + arr = [np.nan, pd.NaT, Timedelta("1 days")] + tm.assert_index_equal(pd.Index(arr), TimedeltaIndex(arr)) + tm.assert_index_equal(pd.Index(np.array(arr)), TimedeltaIndex(np.array(arr))) + + @pytest.mark.filterwarnings( + "ignore:The 'unit' keyword in TimedeltaIndex construction:FutureWarning" + ) + def test_constructor(self): + expected = TimedeltaIndex( + [ + "1 days", + "1 days 00:00:05", + "2 days", + "2 days 00:00:02", + "0 days 00:00:03", + ] + ) + result = TimedeltaIndex( + [ + "1 days", + "1 days, 00:00:05", + np.timedelta64(2, "D"), + timedelta(days=2, seconds=2), + pd.offsets.Second(3), + ] + ) + tm.assert_index_equal(result, expected) + + expected = TimedeltaIndex( + ["0 days 00:00:00", "0 days 00:00:01", "0 days 00:00:02"] + ) + result = TimedeltaIndex(range(3), unit="s") + tm.assert_index_equal(result, expected) + expected = TimedeltaIndex( + ["0 days 00:00:00", "0 days 00:00:05", "0 days 00:00:09"] + ) + result = TimedeltaIndex([0, 5, 9], unit="s") + tm.assert_index_equal(result, expected) + expected = TimedeltaIndex( + ["0 days 00:00:00.400", "0 days 00:00:00.450", "0 days 00:00:01.200"] + ) + result = TimedeltaIndex([400, 450, 1200], unit="ms") + tm.assert_index_equal(result, expected) + + def test_constructor_iso(self): + # GH #21877 + expected = timedelta_range("1s", periods=9, freq="s") + durations = [f"P0DT0H0M{i}S" for i in range(1, 10)] + result = to_timedelta(durations) + tm.assert_index_equal(result, expected) + + def test_timedelta_range_fractional_period(self): + msg = "Non-integer 'periods' in pd.date_range, pd.timedelta_range" + with tm.assert_produces_warning(FutureWarning, match=msg): + rng = timedelta_range("1 days", periods=10.5) + exp = timedelta_range("1 days", periods=10) + tm.assert_index_equal(rng, exp) + + def test_constructor_coverage(self): + msg = "periods must be a number, got foo" + with pytest.raises(TypeError, match=msg): + timedelta_range(start="1 days", periods="foo", freq="D") + + msg = ( + r"TimedeltaIndex\(\.\.\.\) must be called with a collection of some kind, " + "'1 days' was passed" + ) + with pytest.raises(TypeError, match=msg): + TimedeltaIndex("1 days") + + # generator expression + gen = (timedelta(i) for i in range(10)) + result = TimedeltaIndex(gen) + expected = TimedeltaIndex([timedelta(i) for i in range(10)]) + tm.assert_index_equal(result, expected) + + # NumPy string array + strings = np.array(["1 days", "2 days", "3 days"]) + result = TimedeltaIndex(strings) + expected = to_timedelta([1, 2, 3], unit="d") + tm.assert_index_equal(result, expected) + + from_ints = TimedeltaIndex(expected.asi8) + tm.assert_index_equal(from_ints, expected) + + # non-conforming freq + msg = ( + "Inferred frequency None from passed values does not conform to " + "passed frequency D" + ) + with pytest.raises(ValueError, match=msg): + TimedeltaIndex(["1 days", "2 days", "4 days"], freq="D") + + msg = ( + "Of the four parameters: start, end, periods, and freq, exactly " + "three must be specified" + ) + with pytest.raises(ValueError, match=msg): + timedelta_range(periods=10, freq="D") + + def test_constructor_name(self): + idx = timedelta_range(start="1 days", periods=1, freq="D", name="TEST") + assert idx.name == "TEST" + + # GH10025 + idx2 = TimedeltaIndex(idx, name="something else") + assert idx2.name == "something else" + + def test_constructor_no_precision_raises(self): + # GH-24753, GH-24739 + + msg = "with no precision is not allowed" + with pytest.raises(ValueError, match=msg): + TimedeltaIndex(["2000"], dtype="timedelta64") + + msg = "The 'timedelta64' dtype has no unit. Please pass in" + with pytest.raises(ValueError, match=msg): + pd.Index(["2000"], dtype="timedelta64") + + def test_constructor_wrong_precision_raises(self): + msg = "Supported timedelta64 resolutions are 's', 'ms', 'us', 'ns'" + with pytest.raises(ValueError, match=msg): + TimedeltaIndex(["2000"], dtype="timedelta64[D]") + + # "timedelta64[us]" was unsupported pre-2.0, but now this works. + tdi = TimedeltaIndex(["2000"], dtype="timedelta64[us]") + assert tdi.dtype == "m8[us]" + + def test_explicit_none_freq(self): + # Explicitly passing freq=None is respected + tdi = timedelta_range(1, periods=5) + assert tdi.freq is not None + + result = TimedeltaIndex(tdi, freq=None) + assert result.freq is None + + result = TimedeltaIndex(tdi._data, freq=None) + assert result.freq is None + + msg = "TimedeltaArray.__init__ is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + tda = TimedeltaArray(tdi, freq=None) + assert tda.freq is None + + def test_from_categorical(self): + tdi = timedelta_range(1, periods=5) + + cat = pd.Categorical(tdi) + + result = TimedeltaIndex(cat) + tm.assert_index_equal(result, tdi) + + ci = pd.CategoricalIndex(tdi) + result = TimedeltaIndex(ci) + tm.assert_index_equal(result, tdi) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_delete.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_delete.py new file mode 100644 index 0000000000000000000000000000000000000000..6e6f54702ce1a09c0fccb0c44d0cd4a474c46a8c --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_delete.py @@ -0,0 +1,71 @@ +from pandas import ( + TimedeltaIndex, + timedelta_range, +) +import pandas._testing as tm + + +class TestTimedeltaIndexDelete: + def test_delete(self): + idx = timedelta_range(start="1 Days", periods=5, freq="D", name="idx") + + # preserve freq + expected_0 = timedelta_range(start="2 Days", periods=4, freq="D", name="idx") + expected_4 = timedelta_range(start="1 Days", periods=4, freq="D", name="idx") + + # reset freq to None + expected_1 = TimedeltaIndex( + ["1 day", "3 day", "4 day", "5 day"], freq=None, name="idx" + ) + + cases = { + 0: expected_0, + -5: expected_0, + -1: expected_4, + 4: expected_4, + 1: expected_1, + } + for n, expected in cases.items(): + result = idx.delete(n) + tm.assert_index_equal(result, expected) + assert result.name == expected.name + assert result.freq == expected.freq + + with tm.external_error_raised((IndexError, ValueError)): + # either depending on numpy version + idx.delete(5) + + def test_delete_slice(self): + idx = timedelta_range(start="1 days", periods=10, freq="D", name="idx") + + # preserve freq + expected_0_2 = timedelta_range(start="4 days", periods=7, freq="D", name="idx") + expected_7_9 = timedelta_range(start="1 days", periods=7, freq="D", name="idx") + + # reset freq to None + expected_3_5 = TimedeltaIndex( + ["1 d", "2 d", "3 d", "7 d", "8 d", "9 d", "10d"], freq=None, name="idx" + ) + + cases = { + (0, 1, 2): expected_0_2, + (7, 8, 9): expected_7_9, + (3, 4, 5): expected_3_5, + } + for n, expected in cases.items(): + result = idx.delete(n) + tm.assert_index_equal(result, expected) + assert result.name == expected.name + assert result.freq == expected.freq + + result = idx.delete(slice(n[0], n[-1] + 1)) + tm.assert_index_equal(result, expected) + assert result.name == expected.name + assert result.freq == expected.freq + + def test_delete_doesnt_infer_freq(self): + # GH#30655 behavior matches DatetimeIndex + + tdi = TimedeltaIndex(["1 Day", "2 Days", None, "3 Days", "4 Days"]) + result = tdi.delete(2) + assert result.freq is None diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_formats.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_formats.py new file mode 100644 index 0000000000000000000000000000000000000000..607336060cbbc2093e224e31614e26a2c03bd72f --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_formats.py @@ -0,0 +1,106 @@ +import pytest + +import pandas as pd +from pandas import ( + Series, + TimedeltaIndex, +) + + +class TestTimedeltaIndexRendering: + def test_repr_round_days_non_nano(self): + # GH#55405 + # we should get "1 days", not "1 days 00:00:00" with non-nano + tdi = TimedeltaIndex(["1 days"], freq="D").as_unit("s") + result = repr(tdi) + expected = "TimedeltaIndex(['1 days'], dtype='timedelta64[s]', freq='D')" + assert result == expected + + result2 = repr(Series(tdi)) + expected2 = "0 1 days\ndtype: timedelta64[s]" + assert result2 == expected2 + + @pytest.mark.parametrize("method", ["__repr__", "__str__"]) + def test_representation(self, method): + idx1 = TimedeltaIndex([], freq="D") + idx2 = TimedeltaIndex(["1 days"], freq="D") + idx3 = TimedeltaIndex(["1 days", "2 days"], freq="D") + idx4 = TimedeltaIndex(["1 days", "2 days", "3 days"], freq="D") + idx5 = TimedeltaIndex(["1 days 00:00:01", "2 days", "3 days"]) + + exp1 = "TimedeltaIndex([], dtype='timedelta64[ns]', freq='D')" + + exp2 = "TimedeltaIndex(['1 days'], dtype='timedelta64[ns]', freq='D')" + + exp3 = "TimedeltaIndex(['1 days', '2 days'], dtype='timedelta64[ns]', freq='D')" + + exp4 = ( + "TimedeltaIndex(['1 days', '2 days', '3 days'], " + "dtype='timedelta64[ns]', freq='D')" + ) + + exp5 = ( + "TimedeltaIndex(['1 days 00:00:01', '2 days 00:00:00', " + "'3 days 00:00:00'], dtype='timedelta64[ns]', freq=None)" + ) + + with pd.option_context("display.width", 300): + for idx, expected in zip( + [idx1, idx2, idx3, idx4, idx5], [exp1, exp2, exp3, exp4, exp5] + ): + result = getattr(idx, method)() + assert result == expected + + # TODO: this is a Series.__repr__ test + def test_representation_to_series(self): + idx1 = TimedeltaIndex([], freq="D") + idx2 = TimedeltaIndex(["1 days"], freq="D") + idx3 = TimedeltaIndex(["1 days", "2 days"], freq="D") + idx4 = TimedeltaIndex(["1 days", "2 days", "3 days"], freq="D") + idx5 = TimedeltaIndex(["1 days 00:00:01", "2 days", "3 days"]) + + exp1 = """Series([], dtype: timedelta64[ns])""" + + exp2 = "0 1 days\ndtype: timedelta64[ns]" + + exp3 = "0 1 days\n1 2 days\ndtype: timedelta64[ns]" + + exp4 = "0 1 days\n1 2 days\n2 3 days\ndtype: timedelta64[ns]" + + exp5 = ( + "0 1 days 00:00:01\n" + "1 2 days 00:00:00\n" + "2 3 days 00:00:00\n" + "dtype: timedelta64[ns]" + ) + + with pd.option_context("display.width", 300): + for idx, expected in zip( + [idx1, idx2, idx3, idx4, idx5], [exp1, exp2, exp3, exp4, exp5] + ): + result = repr(Series(idx)) + assert result == expected + + def test_summary(self): + # GH#9116 + idx1 = TimedeltaIndex([], freq="D") + idx2 = TimedeltaIndex(["1 days"], freq="D") + idx3 = TimedeltaIndex(["1 days", "2 days"], freq="D") + idx4 = TimedeltaIndex(["1 days", "2 days", "3 days"], freq="D") + idx5 = TimedeltaIndex(["1 days 00:00:01", "2 days", "3 days"]) + + exp1 = "TimedeltaIndex: 0 entries\nFreq: D" + + exp2 = "TimedeltaIndex: 1 entries, 1 days to 1 days\nFreq: D" + + exp3 = "TimedeltaIndex: 2 entries, 1 days to 2 days\nFreq: D" + + exp4 = "TimedeltaIndex: 3 entries, 1 days to 3 days\nFreq: D" + + exp5 = "TimedeltaIndex: 3 entries, 1 days 00:00:01 to 3 days 00:00:00" + + for idx, expected in zip( + [idx1, idx2, idx3, idx4, idx5], [exp1, exp2, exp3, exp4, exp5] + ): + result = idx._summary() + assert result == expected diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_freq_attr.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_freq_attr.py new file mode 100644 index 0000000000000000000000000000000000000000..1912c49d3000fcbef45dd081213778bfb387e38e --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_freq_attr.py @@ -0,0 +1,72 @@ +import pytest + +from pandas import TimedeltaIndex + +from pandas.tseries.offsets import ( + DateOffset, + Day, + Hour, + MonthEnd, +) + + +class TestFreq: + @pytest.mark.parametrize("values", [["0 days", "2 days", "4 days"], []]) + @pytest.mark.parametrize("freq", ["2D", Day(2), "48h", Hour(48)]) + def test_freq_setter(self, values, freq): + # GH#20678 + idx = TimedeltaIndex(values) + + # can set to an offset, converting from string if necessary + idx._data.freq = freq + assert idx.freq == freq + assert isinstance(idx.freq, DateOffset) + + # can reset to None + idx._data.freq = None + assert idx.freq is None + + def test_with_freq_empty_requires_tick(self): + idx = TimedeltaIndex([]) + + off = MonthEnd(1) + msg = "TimedeltaArray/Index freq must be a Tick" + with pytest.raises(TypeError, match=msg): + idx._with_freq(off) + with pytest.raises(TypeError, match=msg): + idx._data._with_freq(off) + + def test_freq_setter_errors(self): + # GH#20678 + idx = TimedeltaIndex(["0 days", "2 days", "4 days"]) + + # setting with an incompatible freq + msg = ( + "Inferred frequency 2D from passed values does not conform to " + "passed frequency 5D" + ) + with pytest.raises(ValueError, match=msg): + idx._data.freq = "5D" + + # setting with a non-fixed frequency + msg = r"<2 \* BusinessDays> is a non-fixed frequency" + with pytest.raises(ValueError, match=msg): + idx._data.freq = "2B" + + # setting with non-freq string + with pytest.raises(ValueError, match="Invalid frequency"): + idx._data.freq = "foo" + + def test_freq_view_safe(self): + # Setting the freq for one TimedeltaIndex shouldn't alter the freq + # for another that views the same data + + tdi = TimedeltaIndex(["0 days", "2 days", "4 days"], freq="2D") + tda = tdi._data + + tdi2 = TimedeltaIndex(tda)._with_freq(None) + assert tdi2.freq is None + + # Original was not altered + assert tdi.freq == "2D" + assert tda.freq == "2D" diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_indexing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_indexing.py new file mode 100644 index 0000000000000000000000000000000000000000..397f9d9e183319f6df9335fbae7f8cb7401d6ac1 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_indexing.py @@ -0,0 +1,347 @@ +from datetime import datetime +import re + +import numpy as np +import pytest + +from pandas import ( + Index, + NaT, + Timedelta, + TimedeltaIndex, + Timestamp, + notna, + offsets, + timedelta_range, + to_timedelta, +) +import pandas._testing as tm + + +class TestGetItem: + def test_getitem_slice_keeps_name(self): + # GH#4226 + tdi = timedelta_range("1d", "5d", freq="h", name="timebucket") + assert tdi[1:].name == tdi.name + + def test_getitem(self): + idx1 = timedelta_range("1 day", "31 day", freq="D", name="idx") + + for idx in [idx1]: + result = idx[0] + assert result == Timedelta("1 day") + + result = idx[0:5] + expected = timedelta_range("1 day", "5 day", freq="D", name="idx") + tm.assert_index_equal(result, expected) + assert result.freq == expected.freq + + result = idx[0:10:2] + expected = timedelta_range("1 day", "9 day", freq="2D", name="idx") + tm.assert_index_equal(result, expected) + assert result.freq == expected.freq + + result = idx[-20:-5:3] + expected = timedelta_range("12 day", "24 day", freq="3D", name="idx") + tm.assert_index_equal(result, expected) + assert result.freq == expected.freq + + result = idx[4::-1] + expected = TimedeltaIndex( + ["5 day", "4 day", "3 day", "2 day", "1 day"], freq="-1D", name="idx" + ) + tm.assert_index_equal(result, expected) + assert result.freq == expected.freq + + @pytest.mark.parametrize( + "key", + [ + Timestamp("1970-01-01"), + Timestamp("1970-01-02"), + datetime(1970, 1, 1), + Timestamp("1970-01-03").to_datetime64(), + # non-matching NA values + np.datetime64("NaT"), + ], + ) + def test_timestamp_invalid_key(self, key): + # GH#20464 + tdi = timedelta_range(0, periods=10) + with pytest.raises(KeyError, match=re.escape(repr(key))): + tdi.get_loc(key) + + +class TestGetLoc: + def test_get_loc_key_unit_mismatch(self): + idx = to_timedelta(["0 days", "1 days", "2 days"]) + key = idx[1].as_unit("ms") + loc = idx.get_loc(key) + assert loc == 1 + + def test_get_loc_key_unit_mismatch_not_castable(self): + tdi = to_timedelta(["0 days", "1 days", "2 days"]).astype("m8[s]") + assert tdi.dtype == "m8[s]" + key = tdi[0].as_unit("ns") + Timedelta(1) + + with pytest.raises(KeyError, match=r"Timedelta\('0 days 00:00:00.000000001'\)"): + tdi.get_loc(key) + + assert key not in tdi + + def test_get_loc(self): + idx = to_timedelta(["0 days", "1 days", "2 days"]) + + # GH 16909 + assert idx.get_loc(idx[1].to_timedelta64()) == 1 + + # GH 16896 + assert idx.get_loc("0 days") == 0 + + def test_get_loc_nat(self): + tidx = TimedeltaIndex(["1 days 01:00:00", "NaT", "2 days 01:00:00"]) + + assert tidx.get_loc(NaT) == 1 + assert tidx.get_loc(None) == 1 + assert tidx.get_loc(float("nan")) == 1 + assert tidx.get_loc(np.nan) == 1 + + +class TestGetIndexer: + def test_get_indexer(self): + idx = to_timedelta(["0 days", "1 days", "2 days"]) + tm.assert_numpy_array_equal( + idx.get_indexer(idx), np.array([0, 1, 2], dtype=np.intp) + ) + + target = to_timedelta(["-1 hour", "12 hours", "1 day 1 hour"]) + tm.assert_numpy_array_equal( + idx.get_indexer(target, "pad"), np.array([-1, 0, 1], dtype=np.intp) + ) + tm.assert_numpy_array_equal( + idx.get_indexer(target, "backfill"), np.array([0, 1, 2], dtype=np.intp) + ) + tm.assert_numpy_array_equal( + idx.get_indexer(target, "nearest"), np.array([0, 1, 1], dtype=np.intp) + ) + + res = idx.get_indexer(target, "nearest", tolerance=Timedelta("1 hour")) + tm.assert_numpy_array_equal(res, np.array([0, -1, 1], dtype=np.intp)) + + +class TestWhere: + def test_where_doesnt_retain_freq(self): + tdi = timedelta_range("1 day", periods=3, freq="D", name="idx") + cond = [True, True, False] + expected = TimedeltaIndex([tdi[0], tdi[1], tdi[0]], freq=None, name="idx") + + result = tdi.where(cond, tdi[::-1]) + tm.assert_index_equal(result, expected) + + def test_where_invalid_dtypes(self, fixed_now_ts): + tdi = timedelta_range("1 day", periods=3, freq="D", name="idx") + + tail = tdi[2:].tolist() + i2 = Index([NaT, NaT] + tail) + mask = notna(i2) + + expected = Index([NaT._value, NaT._value] + tail, dtype=object, name="idx") + assert isinstance(expected[0], int) + result = tdi.where(mask, i2.asi8) + tm.assert_index_equal(result, expected) + + ts = i2 + fixed_now_ts + expected = Index([ts[0], ts[1]] + tail, dtype=object, name="idx") + result = tdi.where(mask, ts) + tm.assert_index_equal(result, expected) + + per = (i2 + fixed_now_ts).to_period("D") + expected = Index([per[0], per[1]] + tail, dtype=object, name="idx") + result = tdi.where(mask, per) + tm.assert_index_equal(result, expected) + + ts = fixed_now_ts + expected = Index([ts, ts] + tail, dtype=object, name="idx") + result = tdi.where(mask, ts) + tm.assert_index_equal(result, expected) + + def test_where_mismatched_nat(self): + tdi = timedelta_range("1 day", periods=3, freq="D", name="idx") + cond = np.array([True, False, False]) + + dtnat = np.datetime64("NaT", "ns") + expected = Index([tdi[0], dtnat, dtnat], dtype=object, name="idx") + assert expected[2] is dtnat + result = tdi.where(cond, dtnat) + tm.assert_index_equal(result, expected) + + +class TestTake: + def test_take(self): + # GH 10295 + idx1 = timedelta_range("1 day", "31 day", freq="D", name="idx") + + for idx in [idx1]: + result = idx.take([0]) + assert result == Timedelta("1 day") + + result = idx.take([-1]) + assert result == Timedelta("31 day") + + result = idx.take([0, 1, 2]) + expected = timedelta_range("1 day", "3 day", freq="D", name="idx") + tm.assert_index_equal(result, expected) + assert result.freq == expected.freq + + result = idx.take([0, 2, 4]) + expected = timedelta_range("1 day", "5 day", freq="2D", name="idx") + tm.assert_index_equal(result, expected) + assert result.freq == expected.freq + + result = idx.take([7, 4, 1]) + expected = timedelta_range("8 day", "2 day", freq="-3D", name="idx") + tm.assert_index_equal(result, expected) + assert result.freq == expected.freq + + result = idx.take([3, 2, 5]) + expected = TimedeltaIndex(["4 day", "3 day", "6 day"], name="idx") + tm.assert_index_equal(result, expected) + assert result.freq is None + + result = idx.take([-3, 2, 5]) + expected = TimedeltaIndex(["29 day", "3 day", "6 day"], name="idx") + tm.assert_index_equal(result, expected) + assert result.freq is None + + def test_take_invalid_kwargs(self): + idx = timedelta_range("1 day", "31 day", freq="D", name="idx") + indices = [1, 6, 5, 9, 10, 13, 15, 3] + + msg = r"take\(\) got an unexpected keyword argument 'foo'" + with pytest.raises(TypeError, match=msg): + idx.take(indices, foo=2) + + msg = "the 'out' parameter is not supported" + with pytest.raises(ValueError, match=msg): + idx.take(indices, out=indices) + + msg = "the 'mode' parameter is not supported" + with pytest.raises(ValueError, match=msg): + idx.take(indices, mode="clip") + + def test_take_equiv_getitem(self): + tds = ["1day 02:00:00", "1 day 04:00:00", "1 day 10:00:00"] + idx = timedelta_range(start="1d", end="2d", freq="h", name="idx") + expected = TimedeltaIndex(tds, freq=None, name="idx") + + taken1 = idx.take([2, 4, 10]) + taken2 = idx[[2, 4, 10]] + + for taken in [taken1, taken2]: + tm.assert_index_equal(taken, expected) + assert isinstance(taken, TimedeltaIndex) + assert taken.freq is None + assert taken.name == expected.name + + def test_take_fill_value(self): + # GH 12631 + idx = TimedeltaIndex(["1 days", "2 days", "3 days"], name="xxx") + result = idx.take(np.array([1, 0, -1])) + expected = TimedeltaIndex(["2 days", "1 days", "3 days"], name="xxx") + tm.assert_index_equal(result, expected) + + # fill_value + result = idx.take(np.array([1, 0, -1]), fill_value=True) + expected = TimedeltaIndex(["2 days", "1 days", "NaT"], name="xxx") + tm.assert_index_equal(result, expected) + + # allow_fill=False + result = idx.take(np.array([1, 0, -1]), allow_fill=False, fill_value=True) + expected = TimedeltaIndex(["2 days", "1 days", "3 days"], name="xxx") + tm.assert_index_equal(result, expected) + + msg = ( + "When allow_fill=True and fill_value is not None, " + "all indices must be >= -1" + ) + with pytest.raises(ValueError, match=msg): + idx.take(np.array([1, 0, -2]), fill_value=True) + with pytest.raises(ValueError, match=msg): + idx.take(np.array([1, 0, -5]), fill_value=True) + + msg = "index -5 is out of bounds for (axis 0 with )?size 3" + with pytest.raises(IndexError, match=msg): + idx.take(np.array([1, -5])) + + +class TestMaybeCastSliceBound: + @pytest.fixture(params=["increasing", "decreasing", None]) + def monotonic(self, request): + return request.param + + @pytest.fixture + def tdi(self, monotonic): + tdi = timedelta_range("1 Day", periods=10) + if monotonic == "decreasing": + tdi = tdi[::-1] + elif monotonic is None: + taker = np.arange(10, dtype=np.intp) + np.random.default_rng(2).shuffle(taker) + tdi = tdi.take(taker) + return tdi + + def test_maybe_cast_slice_bound_invalid_str(self, tdi): + # test the low-level _maybe_cast_slice_bound and that we get the + # expected exception+message all the way up the stack + msg = ( + "cannot do slice indexing on TimedeltaIndex with these " + r"indexers \[foo\] of type str" + ) + with pytest.raises(TypeError, match=msg): + tdi._maybe_cast_slice_bound("foo", side="left") + with pytest.raises(TypeError, match=msg): + tdi.get_slice_bound("foo", side="left") + with pytest.raises(TypeError, match=msg): + tdi.slice_locs("foo", None, None) + + def test_slice_invalid_str_with_timedeltaindex( + self, tdi, frame_or_series, indexer_sl + ): + obj = frame_or_series(range(10), index=tdi) + + msg = ( + "cannot do slice indexing on TimedeltaIndex with these " + r"indexers \[foo\] of type str" + ) + with pytest.raises(TypeError, match=msg): + indexer_sl(obj)["foo":] + with pytest.raises(TypeError, match=msg): + indexer_sl(obj)["foo":-1] + with pytest.raises(TypeError, match=msg): + indexer_sl(obj)[:"foo"] + with pytest.raises(TypeError, match=msg): + indexer_sl(obj)[tdi[0] : "foo"] + + +class TestContains: + def test_contains_nonunique(self): + # GH#9512 + for vals in ( + [0, 1, 0], + [0, 0, -1], + [0, -1, -1], + ["00:01:00", "00:01:00", "00:02:00"], + ["00:01:00", "00:01:00", "00:00:01"], + ): + idx = TimedeltaIndex(vals) + assert idx[0] in idx + + def test_contains(self): + # Checking for any NaT-like objects + # GH#13603 + td = to_timedelta(range(5), unit="d") + offsets.Hour(1) + for v in [NaT, None, float("nan"), np.nan]: + assert v not in td + + td = to_timedelta([NaT]) + for v in [NaT, None, float("nan"), np.nan]: + assert v in td diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_join.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_join.py new file mode 100644 index 0000000000000000000000000000000000000000..cbd7a5de71b10a6004cd7a3f798fecd8e7631750 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_join.py @@ -0,0 +1,47 @@ +import numpy as np + +from pandas import ( + DataFrame, + Index, + Timedelta, + timedelta_range, +) +import pandas._testing as tm + + +class TestJoin: + def test_append_join_nondatetimeindex(self): + rng = timedelta_range("1 days", periods=10) + idx = Index(["a", "b", "c", "d"]) + + result = rng.append(idx) + assert isinstance(result[0], Timedelta) + + # it works + rng.join(idx, how="outer") + + def test_join_self(self, join_type): + index = timedelta_range("1 day", periods=10) + joined = index.join(index, how=join_type) + tm.assert_index_equal(index, joined) + + def test_does_not_convert_mixed_integer(self): + df = DataFrame(np.ones((5, 5)), columns=timedelta_range("1 day", periods=5)) + + cols = df.columns.join(df.index, how="outer") + joined = cols.join(df.columns) + assert cols.dtype == np.dtype("O") + assert cols.dtype == joined.dtype + tm.assert_index_equal(cols, joined) + + def test_join_preserves_freq(self): + # GH#32157 + tdi = timedelta_range("1 day", periods=10) + result = tdi[:5].join(tdi[5:], how="outer") + assert result.freq == tdi.freq + tm.assert_index_equal(result, tdi) + + result = tdi[:5].join(tdi[6:], how="outer") + assert result.freq is None + expected = tdi.delete(5) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_ops.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_ops.py new file mode 100644 index 0000000000000000000000000000000000000000..f6013baf86edcd566a17cd3127467a7443ac475a --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_ops.py @@ -0,0 +1,14 @@ +from pandas import ( + TimedeltaIndex, + timedelta_range, +) +import pandas._testing as tm + + +class TestTimedeltaIndexOps: + def test_infer_freq(self, freq_sample): + # GH#11018 + idx = timedelta_range("1", freq=freq_sample, periods=10) + result = TimedeltaIndex(idx.asi8, freq="infer") + tm.assert_index_equal(idx, result) + assert result.freq == freq_sample diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_pickle.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_pickle.py new file mode 100644 index 0000000000000000000000000000000000000000..befe709728bdd4e9fac3c626f4e33986d671c86d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_pickle.py @@ -0,0 +1,11 @@ +from pandas import timedelta_range +import pandas._testing as tm + + +class TestPickle: + def test_pickle_after_set_freq(self): + tdi = timedelta_range("1 day", periods=4, freq="s") + tdi = tdi._with_freq(None) + + res = tm.round_trip_pickle(tdi) + tm.assert_index_equal(res, tdi) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_scalar_compat.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_scalar_compat.py new file mode 100644 index 0000000000000000000000000000000000000000..9f0552f8baa901addaae9b4ca0890f6edb272715 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_scalar_compat.py @@ -0,0 +1,142 @@ +""" +Tests for TimedeltaIndex methods behaving like their Timedelta counterparts +""" + +import numpy as np +import pytest + +from pandas._libs.tslibs.offsets import INVALID_FREQ_ERR_MSG + +from pandas import ( + Index, + Series, + Timedelta, + TimedeltaIndex, + timedelta_range, +) +import pandas._testing as tm + + +class TestVectorizedTimedelta: + def test_tdi_total_seconds(self): + # GH#10939 + # test index + rng = timedelta_range("1 days, 10:11:12.100123456", periods=2, freq="s") + expt = [ + 1 * 86400 + 10 * 3600 + 11 * 60 + 12 + 100123456.0 / 1e9, + 1 * 86400 + 10 * 3600 + 11 * 60 + 13 + 100123456.0 / 1e9, + ] + tm.assert_almost_equal(rng.total_seconds(), Index(expt)) + + # test Series + ser = Series(rng) + s_expt = Series(expt, index=[0, 1]) + tm.assert_series_equal(ser.dt.total_seconds(), s_expt) + + # with nat + ser[1] = np.nan + s_expt = Series( + [1 * 86400 + 10 * 3600 + 11 * 60 + 12 + 100123456.0 / 1e9, np.nan], + index=[0, 1], + ) + tm.assert_series_equal(ser.dt.total_seconds(), s_expt) + + def test_tdi_total_seconds_all_nat(self): + # with both nat + ser = Series([np.nan, np.nan], dtype="timedelta64[ns]") + result = ser.dt.total_seconds() + expected = Series([np.nan, np.nan]) + tm.assert_series_equal(result, expected) + + def test_tdi_round(self): + td = timedelta_range(start="16801 days", periods=5, freq="30Min") + elt = td[1] + + expected_rng = TimedeltaIndex( + [ + Timedelta("16801 days 00:00:00"), + Timedelta("16801 days 00:00:00"), + Timedelta("16801 days 01:00:00"), + Timedelta("16801 days 02:00:00"), + Timedelta("16801 days 02:00:00"), + ] + ) + expected_elt = expected_rng[1] + + tm.assert_index_equal(td.round(freq="h"), expected_rng) + assert elt.round(freq="h") == expected_elt + + msg = INVALID_FREQ_ERR_MSG + with pytest.raises(ValueError, match=msg): + td.round(freq="foo") + with pytest.raises(ValueError, match=msg): + elt.round(freq="foo") + + msg = " is a non-fixed frequency" + with pytest.raises(ValueError, match=msg): + td.round(freq="ME") + with pytest.raises(ValueError, match=msg): + elt.round(freq="ME") + + @pytest.mark.parametrize( + "freq,msg", + [ + ("YE", " is a non-fixed frequency"), + ("ME", " is a non-fixed frequency"), + ("foobar", "Invalid frequency: foobar"), + ], + ) + def test_tdi_round_invalid(self, freq, msg): + t1 = timedelta_range("1 days", periods=3, freq="1 min 2 s 3 us") + + with pytest.raises(ValueError, match=msg): + t1.round(freq) + with pytest.raises(ValueError, match=msg): + # Same test for TimedeltaArray + t1._data.round(freq) + + # TODO: de-duplicate with test_tdi_round + def test_round(self): + t1 = timedelta_range("1 days", periods=3, freq="1 min 2 s 3 us") + t2 = -1 * t1 + t1a = timedelta_range("1 days", periods=3, freq="1 min 2 s") + t1c = TimedeltaIndex(np.array([1, 1, 1], "m8[D]")).as_unit("ns") + + # note that negative times round DOWN! so don't give whole numbers + for freq, s1, s2 in [ + ("ns", t1, t2), + ("us", t1, t2), + ( + "ms", + t1a, + TimedeltaIndex( + ["-1 days +00:00:00", "-2 days +23:58:58", "-2 days +23:57:56"] + ), + ), + ( + "s", + t1a, + TimedeltaIndex( + ["-1 days +00:00:00", "-2 days +23:58:58", "-2 days +23:57:56"] + ), + ), + ("12min", t1c, TimedeltaIndex(["-1 days", "-1 days", "-1 days"])), + ("h", t1c, TimedeltaIndex(["-1 days", "-1 days", "-1 days"])), + ("d", t1c, -1 * t1c), + ]: + r1 = t1.round(freq) + tm.assert_index_equal(r1, s1) + r2 = t2.round(freq) + tm.assert_index_equal(r2, s2) + + def test_components(self): + rng = timedelta_range("1 days, 10:11:12", periods=2, freq="s") + rng.components + + # with nat + s = Series(rng) + s[1] = np.nan + + result = s.dt.components + assert not result.iloc[0].isna().all() + assert result.iloc[1].isna().all() diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_searchsorted.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_searchsorted.py new file mode 100644 index 0000000000000000000000000000000000000000..710571ef383970097985f44e09ecba77fcf63f74 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_searchsorted.py @@ -0,0 +1,28 @@ +import numpy as np +import pytest + +from pandas import ( + TimedeltaIndex, + Timestamp, +) +import pandas._testing as tm + + +class TestSearchSorted: + def test_searchsorted_different_argument_classes(self, listlike_box): + idx = TimedeltaIndex(["1 day", "2 days", "3 days"]) + result = idx.searchsorted(listlike_box(idx)) + expected = np.arange(len(idx), dtype=result.dtype) + tm.assert_numpy_array_equal(result, expected) + + result = idx._data.searchsorted(listlike_box(idx)) + tm.assert_numpy_array_equal(result, expected) + + @pytest.mark.parametrize( + "arg", [[1, 2], ["a", "b"], [Timestamp("2020-01-01", tz="Europe/London")] * 2] + ) + def test_searchsorted_invalid_argument_dtype(self, arg): + idx = TimedeltaIndex(["1 day", "2 days", "3 days"]) + msg = "value should be a 'Timedelta', 'NaT', or array of those. Got" + with pytest.raises(TypeError, match=msg): + idx.searchsorted(arg) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_setops.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_setops.py new file mode 100644 index 0000000000000000000000000000000000000000..fce10d9176d7438e63a5e46eede1bb96b41bb8bd --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_setops.py @@ -0,0 +1,254 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + Index, + TimedeltaIndex, + timedelta_range, +) +import pandas._testing as tm + +from pandas.tseries.offsets import Hour + + +class TestTimedeltaIndex: + def test_union(self): + i1 = timedelta_range("1day", periods=5) + i2 = timedelta_range("3day", periods=5) + result = i1.union(i2) + expected = timedelta_range("1day", periods=7) + tm.assert_index_equal(result, expected) + + i1 = Index(np.arange(0, 20, 2, dtype=np.int64)) + i2 = timedelta_range(start="1 day", periods=10, freq="D") + i1.union(i2) # Works + i2.union(i1) # Fails with "AttributeError: can't set attribute" + + def test_union_sort_false(self): + tdi = timedelta_range("1day", periods=5) + + left = tdi[3:] + right = tdi[:3] + + # Check that we are testing the desired code path + assert left._can_fast_union(right) + + result = left.union(right) + tm.assert_index_equal(result, tdi) + + result = left.union(right, sort=False) + expected = TimedeltaIndex(["4 Days", "5 Days", "1 Days", "2 Day", "3 Days"]) + tm.assert_index_equal(result, expected) + + def test_union_coverage(self): + idx = TimedeltaIndex(["3d", "1d", "2d"]) + ordered = TimedeltaIndex(idx.sort_values(), freq="infer") + result = ordered.union(idx) + tm.assert_index_equal(result, ordered) + + result = ordered[:0].union(ordered) + tm.assert_index_equal(result, ordered) + assert result.freq == ordered.freq + + def test_union_bug_1730(self): + rng_a = timedelta_range("1 day", periods=4, freq="3h") + rng_b = timedelta_range("1 day", periods=4, freq="4h") + + result = rng_a.union(rng_b) + exp = TimedeltaIndex(sorted(set(rng_a) | set(rng_b))) + tm.assert_index_equal(result, exp) + + def test_union_bug_1745(self): + left = TimedeltaIndex(["1 day 15:19:49.695000"]) + right = TimedeltaIndex( + ["2 day 13:04:21.322000", "1 day 15:27:24.873000", "1 day 15:31:05.350000"] + ) + + result = left.union(right) + exp = TimedeltaIndex(sorted(set(left) | set(right))) + tm.assert_index_equal(result, exp) + + def test_union_bug_4564(self): + left = timedelta_range("1 day", "30d") + right = left + pd.offsets.Minute(15) + + result = left.union(right) + exp = TimedeltaIndex(sorted(set(left) | set(right))) + tm.assert_index_equal(result, exp) + + def test_union_freq_infer(self): + # When taking the union of two TimedeltaIndexes, we infer + # a freq even if the arguments don't have freq. This matches + # DatetimeIndex behavior. + tdi = timedelta_range("1 Day", periods=5) + left = tdi[[0, 1, 3, 4]] + right = tdi[[2, 3, 1]] + + assert left.freq is None + assert right.freq is None + + result = left.union(right) + tm.assert_index_equal(result, tdi) + assert result.freq == "D" + + def test_intersection_bug_1708(self): + index_1 = timedelta_range("1 day", periods=4, freq="h") + index_2 = index_1 + pd.offsets.Hour(5) + + result = index_1.intersection(index_2) + assert len(result) == 0 + + index_1 = timedelta_range("1 day", periods=4, freq="h") + index_2 = index_1 + pd.offsets.Hour(1) + + result = index_1.intersection(index_2) + expected = timedelta_range("1 day 01:00:00", periods=3, freq="h") + tm.assert_index_equal(result, expected) + assert result.freq == expected.freq + + def test_intersection_equal(self, sort): + # GH 24471 Test intersection outcome given the sort keyword + # for equal indices intersection should return the original index + first = timedelta_range("1 day", periods=4, freq="h") + second = timedelta_range("1 day", periods=4, freq="h") + intersect = first.intersection(second, sort=sort) + if sort is None: + tm.assert_index_equal(intersect, second.sort_values()) + tm.assert_index_equal(intersect, second) + + # Corner cases + inter = first.intersection(first, sort=sort) + assert inter is first + + @pytest.mark.parametrize("period_1, period_2", [(0, 4), (4, 0)]) + def test_intersection_zero_length(self, period_1, period_2, sort): + # GH 24471 test for non overlap the intersection should be zero length + index_1 = timedelta_range("1 day", periods=period_1, freq="h") + index_2 = timedelta_range("1 day", periods=period_2, freq="h") + expected = timedelta_range("1 day", periods=0, freq="h") + result = index_1.intersection(index_2, sort=sort) + tm.assert_index_equal(result, expected) + + def test_zero_length_input_index(self, sort): + # GH 24966 test for 0-len intersections are copied + index_1 = timedelta_range("1 day", periods=0, freq="h") + index_2 = timedelta_range("1 day", periods=3, freq="h") + result = index_1.intersection(index_2, sort=sort) + assert index_1 is not result + assert index_2 is not result + tm.assert_copy(result, index_1) + + @pytest.mark.parametrize( + "rng, expected", + # if target has the same name, it is preserved + [ + ( + timedelta_range("1 day", periods=5, freq="h", name="idx"), + timedelta_range("1 day", periods=4, freq="h", name="idx"), + ), + # if target name is different, it will be reset + ( + timedelta_range("1 day", periods=5, freq="h", name="other"), + timedelta_range("1 day", periods=4, freq="h", name=None), + ), + # if no overlap exists return empty index + ( + timedelta_range("1 day", periods=10, freq="h", name="idx")[5:], + TimedeltaIndex([], freq="h", name="idx"), + ), + ], + ) + def test_intersection(self, rng, expected, sort): + # GH 4690 (with tz) + base = timedelta_range("1 day", periods=4, freq="h", name="idx") + result = base.intersection(rng, sort=sort) + if sort is None: + expected = expected.sort_values() + tm.assert_index_equal(result, expected) + assert result.name == expected.name + assert result.freq == expected.freq + + @pytest.mark.parametrize( + "rng, expected", + # part intersection works + [ + ( + TimedeltaIndex(["5 hour", "2 hour", "4 hour", "9 hour"], name="idx"), + TimedeltaIndex(["2 hour", "4 hour"], name="idx"), + ), + # reordered part intersection + ( + TimedeltaIndex(["2 hour", "5 hour", "5 hour", "1 hour"], name="other"), + TimedeltaIndex(["1 hour", "2 hour"], name=None), + ), + # reversed index + ( + TimedeltaIndex(["1 hour", "2 hour", "4 hour", "3 hour"], name="idx")[ + ::-1 + ], + TimedeltaIndex(["1 hour", "2 hour", "4 hour", "3 hour"], name="idx"), + ), + ], + ) + def test_intersection_non_monotonic(self, rng, expected, sort): + # 24471 non-monotonic + base = TimedeltaIndex(["1 hour", "2 hour", "4 hour", "3 hour"], name="idx") + result = base.intersection(rng, sort=sort) + if sort is None: + expected = expected.sort_values() + tm.assert_index_equal(result, expected) + assert result.name == expected.name + + # if reversed order, frequency is still the same + if all(base == rng[::-1]) and sort is None: + assert isinstance(result.freq, Hour) + else: + assert result.freq is None + + +class TestTimedeltaIndexDifference: + def test_difference_freq(self, sort): + # GH14323: Difference of TimedeltaIndex should not preserve frequency + + index = timedelta_range("0 days", "5 days", freq="D") + + other = timedelta_range("1 days", "4 days", freq="D") + expected = TimedeltaIndex(["0 days", "5 days"], freq=None) + idx_diff = index.difference(other, sort) + tm.assert_index_equal(idx_diff, expected) + tm.assert_attr_equal("freq", idx_diff, expected) + + # preserve frequency when the difference is a contiguous + # subset of the original range + other = timedelta_range("2 days", "5 days", freq="D") + idx_diff = index.difference(other, sort) + expected = TimedeltaIndex(["0 days", "1 days"], freq="D") + tm.assert_index_equal(idx_diff, expected) + tm.assert_attr_equal("freq", idx_diff, expected) + + def test_difference_sort(self, sort): + index = TimedeltaIndex( + ["5 days", "3 days", "2 days", "4 days", "1 days", "0 days"] + ) + + other = timedelta_range("1 days", "4 days", freq="D") + idx_diff = index.difference(other, sort) + + expected = TimedeltaIndex(["5 days", "0 days"], freq=None) + + if sort is None: + expected = expected.sort_values() + + tm.assert_index_equal(idx_diff, expected) + tm.assert_attr_equal("freq", idx_diff, expected) + + other = timedelta_range("2 days", "5 days", freq="D") + idx_diff = index.difference(other, sort) + expected = TimedeltaIndex(["1 days", "0 days"], freq=None) + + if sort is None: + expected = expected.sort_values() + + tm.assert_index_equal(idx_diff, expected) + tm.assert_attr_equal("freq", idx_diff, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_timedelta.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_timedelta.py new file mode 100644 index 0000000000000000000000000000000000000000..3120066741ffa292dc1533056438ebf481cb1849 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_timedelta.py @@ -0,0 +1,61 @@ +import numpy as np +import pytest + +from pandas import ( + Index, + Series, + Timedelta, + timedelta_range, +) +import pandas._testing as tm + + +class TestTimedeltaIndex: + def test_misc_coverage(self): + rng = timedelta_range("1 day", periods=5) + result = rng.groupby(rng.days) + assert isinstance(next(iter(result.values()))[0], Timedelta) + + def test_map(self): + # test_map_dictlike generally tests + + rng = timedelta_range("1 day", periods=10) + + f = lambda x: x.days + result = rng.map(f) + exp = Index([f(x) for x in rng], dtype=np.int64) + tm.assert_index_equal(result, exp) + + def test_fields(self): + rng = timedelta_range("1 days, 10:11:12.100123456", periods=2, freq="s") + tm.assert_index_equal(rng.days, Index([1, 1], dtype=np.int64)) + tm.assert_index_equal( + rng.seconds, + Index([10 * 3600 + 11 * 60 + 12, 10 * 3600 + 11 * 60 + 13], dtype=np.int32), + ) + tm.assert_index_equal( + rng.microseconds, + Index([100 * 1000 + 123, 100 * 1000 + 123], dtype=np.int32), + ) + tm.assert_index_equal(rng.nanoseconds, Index([456, 456], dtype=np.int32)) + + msg = "'TimedeltaIndex' object has no attribute '{}'" + with pytest.raises(AttributeError, match=msg.format("hours")): + rng.hours + with pytest.raises(AttributeError, match=msg.format("minutes")): + rng.minutes + with pytest.raises(AttributeError, match=msg.format("milliseconds")): + rng.milliseconds + + # with nat + s = Series(rng) + s[1] = np.nan + + tm.assert_series_equal(s.dt.days, Series([1, np.nan], index=[0, 1])) + tm.assert_series_equal( + s.dt.seconds, Series([10 * 3600 + 11 * 60 + 12, np.nan], index=[0, 1]) + ) + + # preserve name (GH15589) + rng.name = "name" + assert rng.days.name == "name" diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_timedelta_range.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_timedelta_range.py new file mode 100644 index 0000000000000000000000000000000000000000..f22bdb7a90516a7162ebdb1cc2d8cbfd9531b9e7 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexes/timedeltas/test_timedelta_range.py @@ -0,0 +1,173 @@ +import numpy as np +import pytest + +from pandas import ( + Timedelta, + TimedeltaIndex, + timedelta_range, + to_timedelta, +) +import pandas._testing as tm + +from pandas.tseries.offsets import ( + Day, + Second, +) + + +class TestTimedeltas: + def test_timedelta_range_unit(self): + # GH#49824 + tdi = timedelta_range("0 Days", periods=10, freq="100000D", unit="s") + exp_arr = (np.arange(10, dtype="i8") * 100_000).view("m8[D]").astype("m8[s]") + tm.assert_numpy_array_equal(tdi.to_numpy(), exp_arr) + + def test_timedelta_range(self): + expected = to_timedelta(np.arange(5), unit="D") + result = timedelta_range("0 days", periods=5, freq="D") + tm.assert_index_equal(result, expected) + + expected = to_timedelta(np.arange(11), unit="D") + result = timedelta_range("0 days", "10 days", freq="D") + tm.assert_index_equal(result, expected) + + expected = to_timedelta(np.arange(5), unit="D") + Second(2) + Day() + result = timedelta_range("1 days, 00:00:02", "5 days, 00:00:02", freq="D") + tm.assert_index_equal(result, expected) + + expected = to_timedelta([1, 3, 5, 7, 9], unit="D") + Second(2) + result = timedelta_range("1 days, 00:00:02", periods=5, freq="2D") + tm.assert_index_equal(result, expected) + + expected = to_timedelta(np.arange(50), unit="min") * 30 + result = timedelta_range("0 days", freq="30min", periods=50) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "depr_unit, unit", + [ + ("H", "hour"), + ("T", "minute"), + ("t", "minute"), + ("S", "second"), + ("L", "millisecond"), + ("l", "millisecond"), + ("U", "microsecond"), + ("u", "microsecond"), + ("N", "nanosecond"), + ("n", "nanosecond"), + ], + ) + def test_timedelta_units_H_T_S_L_U_N_deprecated(self, depr_unit, unit): + # GH#52536 + depr_msg = ( + f"'{depr_unit}' is deprecated and will be removed in a future version." + ) + + expected = to_timedelta(np.arange(5), unit=unit) + with tm.assert_produces_warning(FutureWarning, match=depr_msg): + result = to_timedelta(np.arange(5), unit=depr_unit) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "periods, freq", [(3, "2D"), (5, "D"), (6, "19h12min"), (7, "16h"), (9, "12h")] + ) + def test_linspace_behavior(self, periods, freq): + # GH 20976 + result = timedelta_range(start="0 days", end="4 days", periods=periods) + expected = timedelta_range(start="0 days", end="4 days", freq=freq) + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("msg_freq, freq", [("H", "19H12min"), ("T", "19h12T")]) + def test_timedelta_range_H_T_deprecated(self, freq, msg_freq): + # GH#52536 + msg = f"'{msg_freq}' is deprecated and will be removed in a future version." + + result = timedelta_range(start="0 days", end="4 days", periods=6) + with tm.assert_produces_warning(FutureWarning, match=msg): + expected = timedelta_range(start="0 days", end="4 days", freq=freq) + tm.assert_index_equal(result, expected) + + def test_errors(self): + # not enough params + msg = ( + "Of the four parameters: start, end, periods, and freq, " + "exactly three must be specified" + ) + with pytest.raises(ValueError, match=msg): + timedelta_range(start="0 days") + + with pytest.raises(ValueError, match=msg): + timedelta_range(end="5 days") + + with pytest.raises(ValueError, match=msg): + timedelta_range(periods=2) + + with pytest.raises(ValueError, match=msg): + timedelta_range() + + # too many params + with pytest.raises(ValueError, match=msg): + timedelta_range(start="0 days", end="5 days", periods=10, freq="h") + + @pytest.mark.parametrize( + "start, end, freq, expected_periods", + [ + ("1D", "10D", "2D", (10 - 1) // 2 + 1), + ("2D", "30D", "3D", (30 - 2) // 3 + 1), + ("2s", "50s", "5s", (50 - 2) // 5 + 1), + # tests that worked before GH 33498: + ("4D", "16D", "3D", (16 - 4) // 3 + 1), + ("8D", "16D", "40s", (16 * 3600 * 24 - 8 * 3600 * 24) // 40 + 1), + ], + ) + def test_timedelta_range_freq_divide_end(self, start, end, freq, expected_periods): + # GH 33498 only the cases where `(end % freq) == 0` used to fail + res = timedelta_range(start=start, end=end, freq=freq) + assert Timedelta(start) == res[0] + assert Timedelta(end) >= res[-1] + assert len(res) == expected_periods + + def test_timedelta_range_infer_freq(self): + # https://github.com/pandas-dev/pandas/issues/35897 + result = timedelta_range("0s", "1s", periods=31) + assert result.freq is None + + @pytest.mark.parametrize( + "freq_depr, start, end, expected_values, expected_freq", + [ + ( + "3.5S", + "05:03:01", + "05:03:10", + ["0 days 05:03:01", "0 days 05:03:04.500000", "0 days 05:03:08"], + "3500ms", + ), + ( + "2.5T", + "5 hours", + "5 hours 8 minutes", + [ + "0 days 05:00:00", + "0 days 05:02:30", + "0 days 05:05:00", + "0 days 05:07:30", + ], + "150s", + ), + ], + ) + def test_timedelta_range_deprecated_freq( + self, freq_depr, start, end, expected_values, expected_freq + ): + # GH#52536 + msg = ( + f"'{freq_depr[-1]}' is deprecated and will be removed in a future version." + ) + + with tm.assert_produces_warning(FutureWarning, match=msg): + result = timedelta_range(start=start, end=end, freq=freq_depr) + expected = TimedeltaIndex( + expected_values, dtype="timedelta64[ns]", freq=expected_freq + ) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/common.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/common.py new file mode 100644 index 0000000000000000000000000000000000000000..2af76f69a4300ac744a5e6f1f7dab185e19767ca --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/common.py @@ -0,0 +1,40 @@ +""" common utilities """ +from __future__ import annotations + +from typing import ( + Any, + Literal, +) + + +def _mklbl(prefix: str, n: int): + return [f"{prefix}{i}" for i in range(n)] + + +def check_indexing_smoketest_or_raises( + obj, + method: Literal["iloc", "loc"], + key: Any, + axes: Literal[0, 1] | None = None, + fails=None, +) -> None: + if axes is None: + axes_list = [0, 1] + else: + assert axes in [0, 1] + axes_list = [axes] + + for ax in axes_list: + if ax < obj.ndim: + # create a tuple accessor + new_axes = [slice(None)] * obj.ndim + new_axes[ax] = key + axified = tuple(new_axes) + try: + getattr(obj, method).__getitem__(axified) + except (IndexError, TypeError, KeyError) as detail: + # if we are in fails, the ok, otherwise raise it + if fails is not None: + if isinstance(detail, fails): + return + raise diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/conftest.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/conftest.py new file mode 100644 index 0000000000000000000000000000000000000000..4184c6a0047ccf0dccb8a72f028b27879130aea5 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/conftest.py @@ -0,0 +1,127 @@ +import numpy as np +import pytest + +from pandas import ( + DataFrame, + Index, + MultiIndex, + Series, + date_range, +) + + +@pytest.fixture +def series_ints(): + return Series(np.random.default_rng(2).random(4), index=np.arange(0, 8, 2)) + + +@pytest.fixture +def frame_ints(): + return DataFrame( + np.random.default_rng(2).standard_normal((4, 4)), + index=np.arange(0, 8, 2), + columns=np.arange(0, 12, 3), + ) + + +@pytest.fixture +def series_uints(): + return Series( + np.random.default_rng(2).random(4), + index=Index(np.arange(0, 8, 2, dtype=np.uint64)), + ) + + +@pytest.fixture +def frame_uints(): + return DataFrame( + np.random.default_rng(2).standard_normal((4, 4)), + index=Index(range(0, 8, 2), dtype=np.uint64), + columns=Index(range(0, 12, 3), dtype=np.uint64), + ) + + +@pytest.fixture +def series_labels(): + return Series(np.random.default_rng(2).standard_normal(4), index=list("abcd")) + + +@pytest.fixture +def frame_labels(): + return DataFrame( + np.random.default_rng(2).standard_normal((4, 4)), + index=list("abcd"), + columns=list("ABCD"), + ) + + +@pytest.fixture +def series_ts(): + return Series( + np.random.default_rng(2).standard_normal(4), + index=date_range("20130101", periods=4), + ) + + +@pytest.fixture +def frame_ts(): + return DataFrame( + np.random.default_rng(2).standard_normal((4, 4)), + index=date_range("20130101", periods=4), + ) + + +@pytest.fixture +def series_floats(): + return Series( + np.random.default_rng(2).random(4), + index=Index(range(0, 8, 2), dtype=np.float64), + ) + + +@pytest.fixture +def frame_floats(): + return DataFrame( + np.random.default_rng(2).standard_normal((4, 4)), + index=Index(range(0, 8, 2), dtype=np.float64), + columns=Index(range(0, 12, 3), dtype=np.float64), + ) + + +@pytest.fixture +def series_mixed(): + return Series(np.random.default_rng(2).standard_normal(4), index=[2, 4, "null", 8]) + + +@pytest.fixture +def frame_mixed(): + return DataFrame( + np.random.default_rng(2).standard_normal((4, 4)), index=[2, 4, "null", 8] + ) + + +@pytest.fixture +def frame_empty(): + return DataFrame() + + +@pytest.fixture +def series_empty(): + return Series(dtype=object) + + +@pytest.fixture +def frame_multi(): + return DataFrame( + np.random.default_rng(2).standard_normal((4, 4)), + index=MultiIndex.from_product([[1, 2], [3, 4]]), + columns=MultiIndex.from_product([[5, 6], [7, 8]]), + ) + + +@pytest.fixture +def series_multi(): + return Series( + np.random.default_rng(2).random(4), + index=MultiIndex.from_product([[1, 2], [3, 4]]), + ) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/interval/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/interval/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/interval/test_interval.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/interval/test_interval.py new file mode 100644 index 0000000000000000000000000000000000000000..dd51917b85a59b2ae88ac0c029dadaa6ff8f19da --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/interval/test_interval.py @@ -0,0 +1,225 @@ +import numpy as np +import pytest + +from pandas._libs import index as libindex + +import pandas as pd +from pandas import ( + DataFrame, + IntervalIndex, + Series, +) +import pandas._testing as tm + + +class TestIntervalIndex: + @pytest.fixture + def series_with_interval_index(self): + return Series(np.arange(5), IntervalIndex.from_breaks(np.arange(6))) + + def test_getitem_with_scalar(self, series_with_interval_index, indexer_sl): + ser = series_with_interval_index.copy() + + expected = ser.iloc[:3] + tm.assert_series_equal(expected, indexer_sl(ser)[:3]) + tm.assert_series_equal(expected, indexer_sl(ser)[:2.5]) + tm.assert_series_equal(expected, indexer_sl(ser)[0.1:2.5]) + if indexer_sl is tm.loc: + tm.assert_series_equal(expected, ser.loc[-1:3]) + + expected = ser.iloc[1:4] + tm.assert_series_equal(expected, indexer_sl(ser)[[1.5, 2.5, 3.5]]) + tm.assert_series_equal(expected, indexer_sl(ser)[[2, 3, 4]]) + tm.assert_series_equal(expected, indexer_sl(ser)[[1.5, 3, 4]]) + + expected = ser.iloc[2:5] + tm.assert_series_equal(expected, indexer_sl(ser)[ser >= 2]) + + @pytest.mark.parametrize("direction", ["increasing", "decreasing"]) + def test_getitem_nonoverlapping_monotonic(self, direction, closed, indexer_sl): + tpls = [(0, 1), (2, 3), (4, 5)] + if direction == "decreasing": + tpls = tpls[::-1] + + idx = IntervalIndex.from_tuples(tpls, closed=closed) + ser = Series(list("abc"), idx) + + for key, expected in zip(idx.left, ser): + if idx.closed_left: + assert indexer_sl(ser)[key] == expected + else: + with pytest.raises(KeyError, match=str(key)): + indexer_sl(ser)[key] + + for key, expected in zip(idx.right, ser): + if idx.closed_right: + assert indexer_sl(ser)[key] == expected + else: + with pytest.raises(KeyError, match=str(key)): + indexer_sl(ser)[key] + + for key, expected in zip(idx.mid, ser): + assert indexer_sl(ser)[key] == expected + + def test_getitem_non_matching(self, series_with_interval_index, indexer_sl): + ser = series_with_interval_index.copy() + + # this is a departure from our current + # indexing scheme, but simpler + with pytest.raises(KeyError, match=r"\[-1\] not in index"): + indexer_sl(ser)[[-1, 3, 4, 5]] + + with pytest.raises(KeyError, match=r"\[-1\] not in index"): + indexer_sl(ser)[[-1, 3]] + + def test_loc_getitem_large_series(self, monkeypatch): + size_cutoff = 20 + with monkeypatch.context(): + monkeypatch.setattr(libindex, "_SIZE_CUTOFF", size_cutoff) + ser = Series( + np.arange(size_cutoff), + index=IntervalIndex.from_breaks(np.arange(size_cutoff + 1)), + ) + + result1 = ser.loc[:8] + result2 = ser.loc[0:8] + result3 = ser.loc[0:8:1] + tm.assert_series_equal(result1, result2) + tm.assert_series_equal(result1, result3) + + def test_loc_getitem_frame(self): + # CategoricalIndex with IntervalIndex categories + df = DataFrame({"A": range(10)}) + ser = pd.cut(df.A, 5) + df["B"] = ser + df = df.set_index("B") + + result = df.loc[4] + expected = df.iloc[4:6] + tm.assert_frame_equal(result, expected) + + with pytest.raises(KeyError, match="10"): + df.loc[10] + + # single list-like + result = df.loc[[4]] + expected = df.iloc[4:6] + tm.assert_frame_equal(result, expected) + + # non-unique + result = df.loc[[4, 5]] + expected = df.take([4, 5, 4, 5]) + tm.assert_frame_equal(result, expected) + + msg = ( + r"None of \[Index\(\[10\], dtype='object', name='B'\)\] " + r"are in the \[index\]" + ) + with pytest.raises(KeyError, match=msg): + df.loc[[10]] + + # partial missing + with pytest.raises(KeyError, match=r"\[10\] not in index"): + df.loc[[10, 4]] + + def test_getitem_interval_with_nans(self, frame_or_series, indexer_sl): + # GH#41831 + + index = IntervalIndex([np.nan, np.nan]) + key = index[:-1] + + obj = frame_or_series(range(2), index=index) + if frame_or_series is DataFrame and indexer_sl is tm.setitem: + obj = obj.T + + result = indexer_sl(obj)[key] + expected = obj + + tm.assert_equal(result, expected) + + def test_setitem_interval_with_slice(self): + # GH#54722 + ii = IntervalIndex.from_breaks(range(4, 15)) + ser = Series(range(10), index=ii) + + orig = ser.copy() + + # This should be a no-op (used to raise) + ser.loc[1:3] = 20 + tm.assert_series_equal(ser, orig) + + ser.loc[6:8] = 19 + orig.iloc[1:4] = 19 + tm.assert_series_equal(ser, orig) + + ser2 = Series(range(5), index=ii[::2]) + orig2 = ser2.copy() + + # this used to raise + ser2.loc[6:8] = 22 # <- raises on main, sets on branch + orig2.iloc[1] = 22 + tm.assert_series_equal(ser2, orig2) + + ser2.loc[5:7] = 21 + orig2.iloc[:2] = 21 + tm.assert_series_equal(ser2, orig2) + + +class TestIntervalIndexInsideMultiIndex: + def test_mi_intervalindex_slicing_with_scalar(self): + # GH#27456 + ii = IntervalIndex.from_arrays( + [0, 1, 10, 11, 0, 1, 10, 11], [1, 2, 11, 12, 1, 2, 11, 12], name="MP" + ) + idx = pd.MultiIndex.from_arrays( + [ + pd.Index(["FC", "FC", "FC", "FC", "OWNER", "OWNER", "OWNER", "OWNER"]), + pd.Index( + ["RID1", "RID1", "RID2", "RID2", "RID1", "RID1", "RID2", "RID2"] + ), + ii, + ] + ) + + idx.names = ["Item", "RID", "MP"] + df = DataFrame({"value": [1, 2, 3, 4, 5, 6, 7, 8]}) + df.index = idx + + query_df = DataFrame( + { + "Item": ["FC", "OWNER", "FC", "OWNER", "OWNER"], + "RID": ["RID1", "RID1", "RID1", "RID2", "RID2"], + "MP": [0.2, 1.5, 1.6, 11.1, 10.9], + } + ) + + query_df = query_df.sort_index() + + idx = pd.MultiIndex.from_arrays([query_df.Item, query_df.RID, query_df.MP]) + query_df.index = idx + result = df.value.loc[query_df.index] + + # the IntervalIndex level is indexed with floats, which map to + # the intervals containing them. Matching the behavior we would get + # with _only_ an IntervalIndex, we get an IntervalIndex level back. + sliced_level = ii.take([0, 1, 1, 3, 2]) + expected_index = pd.MultiIndex.from_arrays( + [idx.get_level_values(0), idx.get_level_values(1), sliced_level] + ) + expected = Series([1, 6, 2, 8, 7], index=expected_index, name="value") + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize( + "base", + [101, 1010], + ) + def test_reindex_behavior_with_interval_index(self, base): + # GH 51826 + + ser = Series( + range(base), + index=IntervalIndex.from_arrays(range(base), range(1, base + 1)), + ) + expected_result = Series([np.nan, 0], index=[np.nan, 1.0], dtype=float) + result = ser.reindex(index=[np.nan, 1.0]) + tm.assert_series_equal(result, expected_result) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/interval/test_interval_new.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/interval/test_interval_new.py new file mode 100644 index 0000000000000000000000000000000000000000..018db5846f4e269efe69de91b30b461822872410 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/interval/test_interval_new.py @@ -0,0 +1,229 @@ +import re + +import numpy as np +import pytest + +from pandas import ( + Index, + Interval, + IntervalIndex, + Series, +) +import pandas._testing as tm + + +class TestIntervalIndex: + @pytest.fixture + def series_with_interval_index(self): + return Series(np.arange(5), IntervalIndex.from_breaks(np.arange(6))) + + def test_loc_with_interval(self, series_with_interval_index, indexer_sl): + # loc with single label / list of labels: + # - Intervals: only exact matches + # - scalars: those that contain it + + ser = series_with_interval_index.copy() + + expected = 0 + result = indexer_sl(ser)[Interval(0, 1)] + assert result == expected + + expected = ser.iloc[3:5] + result = indexer_sl(ser)[[Interval(3, 4), Interval(4, 5)]] + tm.assert_series_equal(expected, result) + + # missing or not exact + with pytest.raises(KeyError, match=re.escape("Interval(3, 5, closed='left')")): + indexer_sl(ser)[Interval(3, 5, closed="left")] + + with pytest.raises(KeyError, match=re.escape("Interval(3, 5, closed='right')")): + indexer_sl(ser)[Interval(3, 5)] + + with pytest.raises( + KeyError, match=re.escape("Interval(-2, 0, closed='right')") + ): + indexer_sl(ser)[Interval(-2, 0)] + + with pytest.raises(KeyError, match=re.escape("Interval(5, 6, closed='right')")): + indexer_sl(ser)[Interval(5, 6)] + + def test_loc_with_scalar(self, series_with_interval_index, indexer_sl): + # loc with single label / list of labels: + # - Intervals: only exact matches + # - scalars: those that contain it + + ser = series_with_interval_index.copy() + + assert indexer_sl(ser)[1] == 0 + assert indexer_sl(ser)[1.5] == 1 + assert indexer_sl(ser)[2] == 1 + + expected = ser.iloc[1:4] + tm.assert_series_equal(expected, indexer_sl(ser)[[1.5, 2.5, 3.5]]) + tm.assert_series_equal(expected, indexer_sl(ser)[[2, 3, 4]]) + tm.assert_series_equal(expected, indexer_sl(ser)[[1.5, 3, 4]]) + + expected = ser.iloc[[1, 1, 2, 1]] + tm.assert_series_equal(expected, indexer_sl(ser)[[1.5, 2, 2.5, 1.5]]) + + expected = ser.iloc[2:5] + tm.assert_series_equal(expected, indexer_sl(ser)[ser >= 2]) + + def test_loc_with_slices(self, series_with_interval_index, indexer_sl): + # loc with slices: + # - Interval objects: only works with exact matches + # - scalars: only works for non-overlapping, monotonic intervals, + # and start/stop select location based on the interval that + # contains them: + # (slice_loc(start, stop) == (idx.get_loc(start), idx.get_loc(stop)) + + ser = series_with_interval_index.copy() + + # slice of interval + + expected = ser.iloc[:3] + result = indexer_sl(ser)[Interval(0, 1) : Interval(2, 3)] + tm.assert_series_equal(expected, result) + + expected = ser.iloc[3:] + result = indexer_sl(ser)[Interval(3, 4) :] + tm.assert_series_equal(expected, result) + + msg = "Interval objects are not currently supported" + with pytest.raises(NotImplementedError, match=msg): + indexer_sl(ser)[Interval(3, 6) :] + + with pytest.raises(NotImplementedError, match=msg): + indexer_sl(ser)[Interval(3, 4, closed="left") :] + + def test_slice_step_ne1(self, series_with_interval_index): + # GH#31658 slice of scalar with step != 1 + ser = series_with_interval_index.copy() + expected = ser.iloc[0:4:2] + + result = ser[0:4:2] + tm.assert_series_equal(result, expected) + + result2 = ser[0:4][::2] + tm.assert_series_equal(result2, expected) + + def test_slice_float_start_stop(self, series_with_interval_index): + # GH#31658 slicing with integers is positional, with floats is not + # supported + ser = series_with_interval_index.copy() + + msg = "label-based slicing with step!=1 is not supported for IntervalIndex" + with pytest.raises(ValueError, match=msg): + ser[1.5:9.5:2] + + def test_slice_interval_step(self, series_with_interval_index): + # GH#31658 allows for integer step!=1, not Interval step + ser = series_with_interval_index.copy() + msg = "label-based slicing with step!=1 is not supported for IntervalIndex" + with pytest.raises(ValueError, match=msg): + ser[0 : 4 : Interval(0, 1)] + + def test_loc_with_overlap(self, indexer_sl): + idx = IntervalIndex.from_tuples([(1, 5), (3, 7)]) + ser = Series(range(len(idx)), index=idx) + + # scalar + expected = ser + result = indexer_sl(ser)[4] + tm.assert_series_equal(expected, result) + + result = indexer_sl(ser)[[4]] + tm.assert_series_equal(expected, result) + + # interval + expected = 0 + result = indexer_sl(ser)[Interval(1, 5)] + assert expected == result + + expected = ser + result = indexer_sl(ser)[[Interval(1, 5), Interval(3, 7)]] + tm.assert_series_equal(expected, result) + + with pytest.raises(KeyError, match=re.escape("Interval(3, 5, closed='right')")): + indexer_sl(ser)[Interval(3, 5)] + + msg = ( + r"None of \[IntervalIndex\(\[\(3, 5\]\], " + r"dtype='interval\[int64, right\]'\)\] are in the \[index\]" + ) + with pytest.raises(KeyError, match=msg): + indexer_sl(ser)[[Interval(3, 5)]] + + # slices with interval (only exact matches) + expected = ser + result = indexer_sl(ser)[Interval(1, 5) : Interval(3, 7)] + tm.assert_series_equal(expected, result) + + msg = ( + "'can only get slices from an IntervalIndex if bounds are " + "non-overlapping and all monotonic increasing or decreasing'" + ) + with pytest.raises(KeyError, match=msg): + indexer_sl(ser)[Interval(1, 6) : Interval(3, 8)] + + if indexer_sl is tm.loc: + # slices with scalar raise for overlapping intervals + # TODO KeyError is the appropriate error? + with pytest.raises(KeyError, match=msg): + ser.loc[1:4] + + def test_non_unique(self, indexer_sl): + idx = IntervalIndex.from_tuples([(1, 3), (3, 7)]) + ser = Series(range(len(idx)), index=idx) + + result = indexer_sl(ser)[Interval(1, 3)] + assert result == 0 + + result = indexer_sl(ser)[[Interval(1, 3)]] + expected = ser.iloc[0:1] + tm.assert_series_equal(expected, result) + + def test_non_unique_moar(self, indexer_sl): + idx = IntervalIndex.from_tuples([(1, 3), (1, 3), (3, 7)]) + ser = Series(range(len(idx)), index=idx) + + expected = ser.iloc[[0, 1]] + result = indexer_sl(ser)[Interval(1, 3)] + tm.assert_series_equal(expected, result) + + expected = ser + result = indexer_sl(ser)[Interval(1, 3) :] + tm.assert_series_equal(expected, result) + + expected = ser.iloc[[0, 1]] + result = indexer_sl(ser)[[Interval(1, 3)]] + tm.assert_series_equal(expected, result) + + def test_loc_getitem_missing_key_error_message( + self, frame_or_series, series_with_interval_index + ): + # GH#27365 + ser = series_with_interval_index.copy() + obj = frame_or_series(ser) + with pytest.raises(KeyError, match=r"\[6\]"): + obj.loc[[4, 5, 6]] + + +@pytest.mark.parametrize( + "intervals", + [ + ([Interval(-np.inf, 0.0), Interval(0.0, 1.0)]), + ([Interval(-np.inf, -2.0), Interval(-2.0, -1.0)]), + ([Interval(-1.0, 0.0), Interval(0.0, np.inf)]), + ([Interval(1.0, 2.0), Interval(2.0, np.inf)]), + ], +) +def test_repeating_interval_index_with_infs(intervals): + # GH 46658 + + interval_index = Index(intervals * 51) + + expected = np.arange(1, 102, 2, dtype=np.intp) + result = interval_index.get_indexer_for([intervals[1]]) + + tm.assert_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_chaining_and_caching.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_chaining_and_caching.py new file mode 100644 index 0000000000000000000000000000000000000000..0dd1a56890fee90e49646ff2a1fe87c6249b3f57 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_chaining_and_caching.py @@ -0,0 +1,87 @@ +import numpy as np +import pytest + +from pandas._libs import index as libindex +from pandas.errors import SettingWithCopyError +import pandas.util._test_decorators as td + +from pandas import ( + DataFrame, + MultiIndex, + Series, +) +import pandas._testing as tm + + +def test_detect_chained_assignment(using_copy_on_write, warn_copy_on_write): + # Inplace ops, originally from: + # https://stackoverflow.com/questions/20508968/series-fillna-in-a-multiindex-dataframe-does-not-fill-is-this-a-bug + a = [12, 23] + b = [123, None] + c = [1234, 2345] + d = [12345, 23456] + tuples = [("eyes", "left"), ("eyes", "right"), ("ears", "left"), ("ears", "right")] + events = { + ("eyes", "left"): a, + ("eyes", "right"): b, + ("ears", "left"): c, + ("ears", "right"): d, + } + multiind = MultiIndex.from_tuples(tuples, names=["part", "side"]) + zed = DataFrame(events, index=["a", "b"], columns=multiind) + + if using_copy_on_write: + with tm.raises_chained_assignment_error(): + zed["eyes"]["right"].fillna(value=555, inplace=True) + elif warn_copy_on_write: + with tm.assert_produces_warning(None): + zed["eyes"]["right"].fillna(value=555, inplace=True) + else: + msg = "A value is trying to be set on a copy of a slice from a DataFrame" + with pytest.raises(SettingWithCopyError, match=msg): + with tm.assert_produces_warning(None): + zed["eyes"]["right"].fillna(value=555, inplace=True) + + +@td.skip_array_manager_invalid_test # with ArrayManager df.loc[0] is not a view +def test_cache_updating(using_copy_on_write, warn_copy_on_write): + # 5216 + # make sure that we don't try to set a dead cache + a = np.random.default_rng(2).random((10, 3)) + df = DataFrame(a, columns=["x", "y", "z"]) + df_original = df.copy() + tuples = [(i, j) for i in range(5) for j in range(2)] + index = MultiIndex.from_tuples(tuples) + df.index = index + + # setting via chained assignment + # but actually works, since everything is a view + + with tm.raises_chained_assignment_error(): + df.loc[0]["z"].iloc[0] = 1.0 + + if using_copy_on_write: + assert df.loc[(0, 0), "z"] == df_original.loc[0, "z"] + else: + result = df.loc[(0, 0), "z"] + assert result == 1 + + # correct setting + df.loc[(0, 0), "z"] = 2 + result = df.loc[(0, 0), "z"] + assert result == 2 + + +def test_indexer_caching(monkeypatch): + # GH5727 + # make sure that indexers are in the _internal_names_set + size_cutoff = 20 + with monkeypatch.context(): + monkeypatch.setattr(libindex, "_SIZE_CUTOFF", size_cutoff) + index = MultiIndex.from_arrays([np.arange(size_cutoff), np.arange(size_cutoff)]) + s = Series(np.zeros(size_cutoff), index=index) + + # setitem + s[s == 0] = 1 + expected = Series(np.ones(size_cutoff), index=index) + tm.assert_series_equal(s, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_datetime.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_datetime.py new file mode 100644 index 0000000000000000000000000000000000000000..d325971e7baf69fb3119afc018c6f90da93e0d3b --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_datetime.py @@ -0,0 +1,50 @@ +from datetime import datetime + +import numpy as np + +from pandas import ( + DataFrame, + Index, + MultiIndex, + Period, + Series, + period_range, + to_datetime, +) +import pandas._testing as tm + + +def test_multiindex_period_datetime(): + # GH4861, using datetime in period of multiindex raises exception + + idx1 = Index(["a", "a", "a", "b", "b"]) + idx2 = period_range("2012-01", periods=len(idx1), freq="M") + s = Series(np.random.default_rng(2).standard_normal(len(idx1)), [idx1, idx2]) + + # try Period as index + expected = s.iloc[0] + result = s.loc["a", Period("2012-01")] + assert result == expected + + # try datetime as index + result = s.loc["a", datetime(2012, 1, 1)] + assert result == expected + + +def test_multiindex_datetime_columns(): + # GH35015, using datetime as column indices raises exception + + mi = MultiIndex.from_tuples( + [(to_datetime("02/29/2020"), to_datetime("03/01/2020"))], names=["a", "b"] + ) + + df = DataFrame([], columns=mi) + + expected_df = DataFrame( + [], + columns=MultiIndex.from_arrays( + [[to_datetime("02/29/2020")], [to_datetime("03/01/2020")]], names=["a", "b"] + ), + ) + + tm.assert_frame_equal(df, expected_df) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_getitem.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_getitem.py new file mode 100644 index 0000000000000000000000000000000000000000..b86e233110e882d3c9a71720bfc0b725bfd46923 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_getitem.py @@ -0,0 +1,410 @@ +import numpy as np +import pytest + +from pandas import ( + DataFrame, + Index, + MultiIndex, + Series, +) +import pandas._testing as tm +from pandas.core.indexing import IndexingError + +# ---------------------------------------------------------------------------- +# test indexing of Series with multi-level Index +# ---------------------------------------------------------------------------- + + +@pytest.mark.parametrize( + "access_method", + [lambda s, x: s[:, x], lambda s, x: s.loc[:, x], lambda s, x: s.xs(x, level=1)], +) +@pytest.mark.parametrize( + "level1_value, expected", + [(0, Series([1], index=[0])), (1, Series([2, 3], index=[1, 2]))], +) +def test_series_getitem_multiindex(access_method, level1_value, expected): + # GH 6018 + # series regression getitem with a multi-index + + mi = MultiIndex.from_tuples([(0, 0), (1, 1), (2, 1)], names=["A", "B"]) + ser = Series([1, 2, 3], index=mi) + expected.index.name = "A" + + result = access_method(ser, level1_value) + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("level0_value", ["D", "A"]) +def test_series_getitem_duplicates_multiindex(level0_value): + # GH 5725 the 'A' happens to be a valid Timestamp so the doesn't raise + # the appropriate error, only in PY3 of course! + + index = MultiIndex( + levels=[[level0_value, "B", "C"], [0, 26, 27, 37, 57, 67, 75, 82]], + codes=[[0, 0, 0, 1, 2, 2, 2, 2, 2, 2], [1, 3, 4, 6, 0, 2, 2, 3, 5, 7]], + names=["tag", "day"], + ) + arr = np.random.default_rng(2).standard_normal((len(index), 1)) + df = DataFrame(arr, index=index, columns=["val"]) + + # confirm indexing on missing value raises KeyError + if level0_value != "A": + with pytest.raises(KeyError, match=r"^'A'$"): + df.val["A"] + + with pytest.raises(KeyError, match=r"^'X'$"): + df.val["X"] + + result = df.val[level0_value] + expected = Series( + arr.ravel()[0:3], name="val", index=Index([26, 37, 57], name="day") + ) + tm.assert_series_equal(result, expected) + + +def test_series_getitem(multiindex_year_month_day_dataframe_random_data, indexer_sl): + s = multiindex_year_month_day_dataframe_random_data["A"] + expected = s.reindex(s.index[42:65]) + expected.index = expected.index.droplevel(0).droplevel(0) + + result = indexer_sl(s)[2000, 3] + tm.assert_series_equal(result, expected) + + +def test_series_getitem_returns_scalar( + multiindex_year_month_day_dataframe_random_data, indexer_sl +): + s = multiindex_year_month_day_dataframe_random_data["A"] + expected = s.iloc[49] + + result = indexer_sl(s)[2000, 3, 10] + assert result == expected + + +@pytest.mark.parametrize( + "indexer,expected_error,expected_error_msg", + [ + (lambda s: s.__getitem__((2000, 3, 4)), KeyError, r"^\(2000, 3, 4\)$"), + (lambda s: s[(2000, 3, 4)], KeyError, r"^\(2000, 3, 4\)$"), + (lambda s: s.loc[(2000, 3, 4)], KeyError, r"^\(2000, 3, 4\)$"), + (lambda s: s.loc[(2000, 3, 4, 5)], IndexingError, "Too many indexers"), + (lambda s: s.__getitem__(len(s)), KeyError, ""), # match should include len(s) + (lambda s: s[len(s)], KeyError, ""), # match should include len(s) + ( + lambda s: s.iloc[len(s)], + IndexError, + "single positional indexer is out-of-bounds", + ), + ], +) +def test_series_getitem_indexing_errors( + multiindex_year_month_day_dataframe_random_data, + indexer, + expected_error, + expected_error_msg, +): + s = multiindex_year_month_day_dataframe_random_data["A"] + with pytest.raises(expected_error, match=expected_error_msg): + indexer(s) + + +def test_series_getitem_corner_generator( + multiindex_year_month_day_dataframe_random_data, +): + s = multiindex_year_month_day_dataframe_random_data["A"] + result = s[(x > 0 for x in s)] + expected = s[s > 0] + tm.assert_series_equal(result, expected) + + +# ---------------------------------------------------------------------------- +# test indexing of DataFrame with multi-level Index +# ---------------------------------------------------------------------------- + + +def test_getitem_simple(multiindex_dataframe_random_data): + df = multiindex_dataframe_random_data.T + expected = df.values[:, 0] + result = df["foo", "one"].values + tm.assert_almost_equal(result, expected) + + +@pytest.mark.parametrize( + "indexer,expected_error_msg", + [ + (lambda df: df[("foo", "four")], r"^\('foo', 'four'\)$"), + (lambda df: df["foobar"], r"^'foobar'$"), + ], +) +def test_frame_getitem_simple_key_error( + multiindex_dataframe_random_data, indexer, expected_error_msg +): + df = multiindex_dataframe_random_data.T + with pytest.raises(KeyError, match=expected_error_msg): + indexer(df) + + +def test_tuple_string_column_names(): + # GH#50372 + mi = MultiIndex.from_tuples([("a", "aa"), ("a", "ab"), ("b", "ba"), ("b", "bb")]) + df = DataFrame([range(4), range(1, 5), range(2, 6)], columns=mi) + df["single_index"] = 0 + + df_flat = df.copy() + df_flat.columns = df_flat.columns.to_flat_index() + df_flat["new_single_index"] = 0 + + result = df_flat[[("a", "aa"), "new_single_index"]] + expected = DataFrame( + [[0, 0], [1, 0], [2, 0]], columns=Index([("a", "aa"), "new_single_index"]) + ) + tm.assert_frame_equal(result, expected) + + +def test_frame_getitem_multicolumn_empty_level(): + df = DataFrame({"a": ["1", "2", "3"], "b": ["2", "3", "4"]}) + df.columns = [ + ["level1 item1", "level1 item2"], + ["", "level2 item2"], + ["level3 item1", "level3 item2"], + ] + + result = df["level1 item1"] + expected = DataFrame( + [["1"], ["2"], ["3"]], index=df.index, columns=["level3 item1"] + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "indexer,expected_slice", + [ + (lambda df: df["foo"], slice(3)), + (lambda df: df["bar"], slice(3, 5)), + (lambda df: df.loc[:, "bar"], slice(3, 5)), + ], +) +def test_frame_getitem_toplevel( + multiindex_dataframe_random_data, indexer, expected_slice +): + df = multiindex_dataframe_random_data.T + expected = df.reindex(columns=df.columns[expected_slice]) + expected.columns = expected.columns.droplevel(0) + result = indexer(df) + tm.assert_frame_equal(result, expected) + + +def test_frame_mixed_depth_get(): + arrays = [ + ["a", "top", "top", "routine1", "routine1", "routine2"], + ["", "OD", "OD", "result1", "result2", "result1"], + ["", "wx", "wy", "", "", ""], + ] + + tuples = sorted(zip(*arrays)) + index = MultiIndex.from_tuples(tuples) + df = DataFrame(np.random.default_rng(2).standard_normal((4, 6)), columns=index) + + result = df["a"] + expected = df["a", "", ""].rename("a") + tm.assert_series_equal(result, expected) + + result = df["routine1", "result1"] + expected = df["routine1", "result1", ""] + expected = expected.rename(("routine1", "result1")) + tm.assert_series_equal(result, expected) + + +def test_frame_getitem_nan_multiindex(nulls_fixture): + # GH#29751 + # loc on a multiindex containing nan values + n = nulls_fixture # for code readability + cols = ["a", "b", "c"] + df = DataFrame( + [[11, n, 13], [21, n, 23], [31, n, 33], [41, n, 43]], + columns=cols, + ).set_index(["a", "b"]) + df["c"] = df["c"].astype("int64") + + idx = (21, n) + result = df.loc[:idx] + expected = DataFrame([[11, n, 13], [21, n, 23]], columns=cols).set_index(["a", "b"]) + expected["c"] = expected["c"].astype("int64") + tm.assert_frame_equal(result, expected) + + result = df.loc[idx:] + expected = DataFrame( + [[21, n, 23], [31, n, 33], [41, n, 43]], columns=cols + ).set_index(["a", "b"]) + expected["c"] = expected["c"].astype("int64") + tm.assert_frame_equal(result, expected) + + idx1, idx2 = (21, n), (31, n) + result = df.loc[idx1:idx2] + expected = DataFrame([[21, n, 23], [31, n, 33]], columns=cols).set_index(["a", "b"]) + expected["c"] = expected["c"].astype("int64") + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "indexer,expected", + [ + ( + (["b"], ["bar", np.nan]), + ( + DataFrame( + [[2, 3], [5, 6]], + columns=MultiIndex.from_tuples([("b", "bar"), ("b", np.nan)]), + dtype="int64", + ) + ), + ), + ( + (["a", "b"]), + ( + DataFrame( + [[1, 2, 3], [4, 5, 6]], + columns=MultiIndex.from_tuples( + [("a", "foo"), ("b", "bar"), ("b", np.nan)] + ), + dtype="int64", + ) + ), + ), + ( + (["b"]), + ( + DataFrame( + [[2, 3], [5, 6]], + columns=MultiIndex.from_tuples([("b", "bar"), ("b", np.nan)]), + dtype="int64", + ) + ), + ), + ( + (["b"], ["bar"]), + ( + DataFrame( + [[2], [5]], + columns=MultiIndex.from_tuples([("b", "bar")]), + dtype="int64", + ) + ), + ), + ( + (["b"], [np.nan]), + ( + DataFrame( + [[3], [6]], + columns=MultiIndex( + codes=[[1], [-1]], levels=[["a", "b"], ["bar", "foo"]] + ), + dtype="int64", + ) + ), + ), + (("b", np.nan), Series([3, 6], dtype="int64", name=("b", np.nan))), + ], +) +def test_frame_getitem_nan_cols_multiindex( + indexer, + expected, + nulls_fixture, +): + # Slicing MultiIndex including levels with nan values, for more information + # see GH#25154 + df = DataFrame( + [[1, 2, 3], [4, 5, 6]], + columns=MultiIndex.from_tuples( + [("a", "foo"), ("b", "bar"), ("b", nulls_fixture)] + ), + dtype="int64", + ) + + result = df.loc[:, indexer] + tm.assert_equal(result, expected) + + +# ---------------------------------------------------------------------------- +# test indexing of DataFrame with multi-level Index with duplicates +# ---------------------------------------------------------------------------- + + +@pytest.fixture +def dataframe_with_duplicate_index(): + """Fixture for DataFrame used in tests for gh-4145 and gh-4146""" + data = [["a", "d", "e", "c", "f", "b"], [1, 4, 5, 3, 6, 2], [1, 4, 5, 3, 6, 2]] + index = ["h1", "h3", "h5"] + columns = MultiIndex( + levels=[["A", "B"], ["A1", "A2", "B1", "B2"]], + codes=[[0, 0, 0, 1, 1, 1], [0, 3, 3, 0, 1, 2]], + names=["main", "sub"], + ) + return DataFrame(data, index=index, columns=columns) + + +@pytest.mark.parametrize( + "indexer", [lambda df: df[("A", "A1")], lambda df: df.loc[:, ("A", "A1")]] +) +def test_frame_mi_access(dataframe_with_duplicate_index, indexer): + # GH 4145 + df = dataframe_with_duplicate_index + index = Index(["h1", "h3", "h5"]) + columns = MultiIndex.from_tuples([("A", "A1")], names=["main", "sub"]) + expected = DataFrame([["a", 1, 1]], index=columns, columns=index).T + + result = indexer(df) + tm.assert_frame_equal(result, expected) + + +def test_frame_mi_access_returns_series(dataframe_with_duplicate_index): + # GH 4146, not returning a block manager when selecting a unique index + # from a duplicate index + # as of 4879, this returns a Series (which is similar to what happens + # with a non-unique) + df = dataframe_with_duplicate_index + expected = Series(["a", 1, 1], index=["h1", "h3", "h5"], name="A1") + result = df["A"]["A1"] + tm.assert_series_equal(result, expected) + + +def test_frame_mi_access_returns_frame(dataframe_with_duplicate_index): + # selecting a non_unique from the 2nd level + df = dataframe_with_duplicate_index + expected = DataFrame( + [["d", 4, 4], ["e", 5, 5]], + index=Index(["B2", "B2"], name="sub"), + columns=["h1", "h3", "h5"], + ).T + result = df["A"]["B2"] + tm.assert_frame_equal(result, expected) + + +def test_frame_mi_empty_slice(): + # GH 15454 + df = DataFrame(0, index=range(2), columns=MultiIndex.from_product([[1], [2]])) + result = df[[]] + expected = DataFrame( + index=[0, 1], columns=MultiIndex(levels=[[1], [2]], codes=[[], []]) + ) + tm.assert_frame_equal(result, expected) + + +def test_loc_empty_multiindex(): + # GH#36936 + arrays = [["a", "a", "b", "a"], ["a", "a", "b", "b"]] + index = MultiIndex.from_arrays(arrays, names=("idx1", "idx2")) + df = DataFrame([1, 2, 3, 4], index=index, columns=["value"]) + + # loc on empty multiindex == loc with False mask + empty_multiindex = df.loc[df.loc[:, "value"] == 0, :].index + result = df.loc[empty_multiindex, :] + expected = df.loc[[False] * len(df.index), :] + tm.assert_frame_equal(result, expected) + + # replacing value with loc on empty multiindex + df.loc[df.loc[df.loc[:, "value"] == 0].index, "value"] = 5 + result = df + expected = DataFrame([1, 2, 3, 4], index=index, columns=["value"]) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_iloc.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_iloc.py new file mode 100644 index 0000000000000000000000000000000000000000..8939ecc78000be08812afb702358e7eee1ae9499 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_iloc.py @@ -0,0 +1,171 @@ +import numpy as np +import pytest + +from pandas import ( + DataFrame, + MultiIndex, + Series, +) +import pandas._testing as tm + + +@pytest.fixture +def simple_multiindex_dataframe(): + """ + Factory function to create simple 3 x 3 dataframe with + both columns and row MultiIndex using supplied data or + random data by default. + """ + + data = np.random.default_rng(2).standard_normal((3, 3)) + return DataFrame( + data, columns=[[2, 2, 4], [6, 8, 10]], index=[[4, 4, 8], [8, 10, 12]] + ) + + +@pytest.mark.parametrize( + "indexer, expected", + [ + ( + lambda df: df.iloc[0], + lambda arr: Series(arr[0], index=[[2, 2, 4], [6, 8, 10]], name=(4, 8)), + ), + ( + lambda df: df.iloc[2], + lambda arr: Series(arr[2], index=[[2, 2, 4], [6, 8, 10]], name=(8, 12)), + ), + ( + lambda df: df.iloc[:, 2], + lambda arr: Series(arr[:, 2], index=[[4, 4, 8], [8, 10, 12]], name=(4, 10)), + ), + ], +) +def test_iloc_returns_series(indexer, expected, simple_multiindex_dataframe): + df = simple_multiindex_dataframe + arr = df.values + result = indexer(df) + expected = expected(arr) + tm.assert_series_equal(result, expected) + + +def test_iloc_returns_dataframe(simple_multiindex_dataframe): + df = simple_multiindex_dataframe + result = df.iloc[[0, 1]] + expected = df.xs(4, drop_level=False) + tm.assert_frame_equal(result, expected) + + +def test_iloc_returns_scalar(simple_multiindex_dataframe): + df = simple_multiindex_dataframe + arr = df.values + result = df.iloc[2, 2] + expected = arr[2, 2] + assert result == expected + + +def test_iloc_getitem_multiple_items(): + # GH 5528 + tup = zip(*[["a", "a", "b", "b"], ["x", "y", "x", "y"]]) + index = MultiIndex.from_tuples(tup) + df = DataFrame(np.random.default_rng(2).standard_normal((4, 4)), index=index) + result = df.iloc[[2, 3]] + expected = df.xs("b", drop_level=False) + tm.assert_frame_equal(result, expected) + + +def test_iloc_getitem_labels(): + # this is basically regular indexing + arr = np.random.default_rng(2).standard_normal((4, 3)) + df = DataFrame( + arr, + columns=[["i", "i", "j"], ["A", "A", "B"]], + index=[["i", "i", "j", "k"], ["X", "X", "Y", "Y"]], + ) + result = df.iloc[2, 2] + expected = arr[2, 2] + assert result == expected + + +def test_frame_getitem_slice(multiindex_dataframe_random_data): + df = multiindex_dataframe_random_data + result = df.iloc[:4] + expected = df[:4] + tm.assert_frame_equal(result, expected) + + +def test_frame_setitem_slice(multiindex_dataframe_random_data): + df = multiindex_dataframe_random_data + df.iloc[:4] = 0 + + assert (df.values[:4] == 0).all() + assert (df.values[4:] != 0).all() + + +def test_indexing_ambiguity_bug_1678(): + # GH 1678 + columns = MultiIndex.from_tuples( + [("Ohio", "Green"), ("Ohio", "Red"), ("Colorado", "Green")] + ) + index = MultiIndex.from_tuples([("a", 1), ("a", 2), ("b", 1), ("b", 2)]) + + df = DataFrame(np.arange(12).reshape((4, 3)), index=index, columns=columns) + + result = df.iloc[:, 1] + expected = df.loc[:, ("Ohio", "Red")] + tm.assert_series_equal(result, expected) + + +def test_iloc_integer_locations(): + # GH 13797 + data = [ + ["str00", "str01"], + ["str10", "str11"], + ["str20", "srt21"], + ["str30", "str31"], + ["str40", "str41"], + ] + + index = MultiIndex.from_tuples( + [("CC", "A"), ("CC", "B"), ("CC", "B"), ("BB", "a"), ("BB", "b")] + ) + + expected = DataFrame(data) + df = DataFrame(data, index=index) + + result = DataFrame([[df.iloc[r, c] for c in range(2)] for r in range(5)]) + + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "data, indexes, values, expected_k", + [ + # test without indexer value in first level of MultiIndex + ([[2, 22, 5], [2, 33, 6]], [0, -1, 1], [2, 3, 1], [7, 10]), + # test like code sample 1 in the issue + ([[1, 22, 555], [1, 33, 666]], [0, -1, 1], [200, 300, 100], [755, 1066]), + # test like code sample 2 in the issue + ([[1, 3, 7], [2, 4, 8]], [0, -1, 1], [10, 10, 1000], [17, 1018]), + # test like code sample 3 in the issue + ([[1, 11, 4], [2, 22, 5], [3, 33, 6]], [0, -1, 1], [4, 7, 10], [8, 15, 13]), + ], +) +def test_iloc_setitem_int_multiindex_series(data, indexes, values, expected_k): + # GH17148 + df = DataFrame(data=data, columns=["i", "j", "k"]) + df = df.set_index(["i", "j"]) + + series = df.k.copy() + for i, v in zip(indexes, values): + series.iloc[i] += v + + df["k"] = expected_k + expected = df.k + tm.assert_series_equal(series, expected) + + +def test_getitem_iloc(multiindex_dataframe_random_data): + df = multiindex_dataframe_random_data + result = df.iloc[2] + expected = df.xs(df.index[2]) + tm.assert_series_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_indexing_slow.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_indexing_slow.py new file mode 100644 index 0000000000000000000000000000000000000000..c6fc1659500e62423f20cca44b40762bee60509d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_indexing_slow.py @@ -0,0 +1,118 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + DataFrame, + Series, +) +import pandas._testing as tm + + +@pytest.fixture +def m(): + return 5 + + +@pytest.fixture +def n(): + return 100 + + +@pytest.fixture +def cols(): + return ["jim", "joe", "jolie", "joline", "jolia"] + + +@pytest.fixture +def vals(n): + vals = [ + np.random.default_rng(2).integers(0, 10, n), + np.random.default_rng(2).choice(list("abcdefghij"), n), + np.random.default_rng(2).choice( + pd.date_range("20141009", periods=10).tolist(), n + ), + np.random.default_rng(2).choice(list("ZYXWVUTSRQ"), n), + np.random.default_rng(2).standard_normal(n), + ] + vals = list(map(tuple, zip(*vals))) + return vals + + +@pytest.fixture +def keys(n, m, vals): + # bunch of keys for testing + keys = [ + np.random.default_rng(2).integers(0, 11, m), + np.random.default_rng(2).choice(list("abcdefghijk"), m), + np.random.default_rng(2).choice( + pd.date_range("20141009", periods=11).tolist(), m + ), + np.random.default_rng(2).choice(list("ZYXWVUTSRQP"), m), + ] + keys = list(map(tuple, zip(*keys))) + keys += [t[:-1] for t in vals[:: n // m]] + return keys + + +# covers both unique index and non-unique index +@pytest.fixture +def df(vals, cols): + return DataFrame(vals, columns=cols) + + +@pytest.fixture +def a(df): + return pd.concat([df, df]) + + +@pytest.fixture +def b(df, cols): + return df.drop_duplicates(subset=cols[:-1]) + + +@pytest.mark.filterwarnings("ignore::pandas.errors.PerformanceWarning") +@pytest.mark.parametrize("lexsort_depth", list(range(5))) +@pytest.mark.parametrize("frame_fixture", ["a", "b"]) +def test_multiindex_get_loc(request, lexsort_depth, keys, frame_fixture, cols): + # GH7724, GH2646 + + frame = request.getfixturevalue(frame_fixture) + if lexsort_depth == 0: + df = frame.copy(deep=False) + else: + df = frame.sort_values(by=cols[:lexsort_depth]) + + mi = df.set_index(cols[:-1]) + assert not mi.index._lexsort_depth < lexsort_depth + for key in keys: + mask = np.ones(len(df), dtype=bool) + + # test for all partials of this key + for i, k in enumerate(key): + mask &= df.iloc[:, i] == k + + if not mask.any(): + assert key[: i + 1] not in mi.index + continue + + assert key[: i + 1] in mi.index + right = df[mask].copy(deep=False) + + if i + 1 != len(key): # partial key + return_value = right.drop(cols[: i + 1], axis=1, inplace=True) + assert return_value is None + return_value = right.set_index(cols[i + 1 : -1], inplace=True) + assert return_value is None + tm.assert_frame_equal(mi.loc[key[: i + 1]], right) + + else: # full key + return_value = right.set_index(cols[:-1], inplace=True) + assert return_value is None + if len(right) == 1: # single hit + right = Series( + right["jolia"].values, name=right.index[0], index=["jolia"] + ) + tm.assert_series_equal(mi.loc[key[: i + 1]], right) + else: # multi hit + tm.assert_frame_equal(mi.loc[key[: i + 1]], right) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_loc.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_loc.py new file mode 100644 index 0000000000000000000000000000000000000000..8697103dd6f1a8c6f048fc701d2b650b2f249503 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_loc.py @@ -0,0 +1,1000 @@ +import numpy as np +import pytest + +from pandas.errors import ( + IndexingError, + PerformanceWarning, +) + +import pandas as pd +from pandas import ( + DataFrame, + Index, + MultiIndex, + Series, +) +import pandas._testing as tm + + +@pytest.fixture +def single_level_multiindex(): + """single level MultiIndex""" + return MultiIndex( + levels=[["foo", "bar", "baz", "qux"]], codes=[[0, 1, 2, 3]], names=["first"] + ) + + +@pytest.fixture +def frame_random_data_integer_multi_index(): + levels = [[0, 1], [0, 1, 2]] + codes = [[0, 0, 0, 1, 1, 1], [0, 1, 2, 0, 1, 2]] + index = MultiIndex(levels=levels, codes=codes) + return DataFrame(np.random.default_rng(2).standard_normal((6, 2)), index=index) + + +class TestMultiIndexLoc: + @pytest.mark.filterwarnings("ignore:Setting a value on a view:FutureWarning") + @pytest.mark.parametrize("has_ref", [True, False]) + def test_loc_setitem_frame_with_multiindex( + self, multiindex_dataframe_random_data, has_ref + ): + frame = multiindex_dataframe_random_data + if has_ref: + view = frame[:] + frame.loc[("bar", "two"), "B"] = 5 + assert frame.loc[("bar", "two"), "B"] == 5 + + # with integer labels + df = frame.copy() + df.columns = list(range(3)) + if has_ref: + view = df[:] # noqa: F841 + df.loc[("bar", "two"), 1] = 7 + assert df.loc[("bar", "two"), 1] == 7 + + def test_loc_getitem_general(self, any_real_numpy_dtype): + # GH#2817 + dtype = any_real_numpy_dtype + data = { + "amount": {0: 700, 1: 600, 2: 222, 3: 333, 4: 444}, + "col": {0: 3.5, 1: 3.5, 2: 4.0, 3: 4.0, 4: 4.0}, + "num": {0: 12, 1: 11, 2: 12, 3: 12, 4: 12}, + } + df = DataFrame(data) + df = df.astype({"col": dtype, "num": dtype}) + df = df.set_index(keys=["col", "num"]) + key = 4.0, 12 + + # emits a PerformanceWarning, ok + with tm.assert_produces_warning(PerformanceWarning): + tm.assert_frame_equal(df.loc[key], df.iloc[2:]) + + # this is ok + return_value = df.sort_index(inplace=True) + assert return_value is None + res = df.loc[key] + + # col has float dtype, result should be float64 Index + col_arr = np.array([4.0] * 3, dtype=dtype) + year_arr = np.array([12] * 3, dtype=dtype) + index = MultiIndex.from_arrays([col_arr, year_arr], names=["col", "num"]) + expected = DataFrame({"amount": [222, 333, 444]}, index=index) + tm.assert_frame_equal(res, expected) + + def test_loc_getitem_multiindex_missing_label_raises(self): + # GH#21593 + df = DataFrame( + np.random.default_rng(2).standard_normal((3, 3)), + columns=[[2, 2, 4], [6, 8, 10]], + index=[[4, 4, 8], [8, 10, 12]], + ) + + with pytest.raises(KeyError, match=r"^2$"): + df.loc[2] + + def test_loc_getitem_list_of_tuples_with_multiindex( + self, multiindex_year_month_day_dataframe_random_data + ): + ser = multiindex_year_month_day_dataframe_random_data["A"] + expected = ser.reindex(ser.index[49:51]) + result = ser.loc[[(2000, 3, 10), (2000, 3, 13)]] + tm.assert_series_equal(result, expected) + + def test_loc_getitem_series(self): + # GH14730 + # passing a series as a key with a MultiIndex + index = MultiIndex.from_product([[1, 2, 3], ["A", "B", "C"]]) + x = Series(index=index, data=range(9), dtype=np.float64) + y = Series([1, 3]) + expected = Series( + data=[0, 1, 2, 6, 7, 8], + index=MultiIndex.from_product([[1, 3], ["A", "B", "C"]]), + dtype=np.float64, + ) + result = x.loc[y] + tm.assert_series_equal(result, expected) + + result = x.loc[[1, 3]] + tm.assert_series_equal(result, expected) + + # GH15424 + y1 = Series([1, 3], index=[1, 2]) + result = x.loc[y1] + tm.assert_series_equal(result, expected) + + empty = Series(data=[], dtype=np.float64) + expected = Series( + [], + index=MultiIndex(levels=index.levels, codes=[[], []], dtype=np.float64), + dtype=np.float64, + ) + result = x.loc[empty] + tm.assert_series_equal(result, expected) + + def test_loc_getitem_array(self): + # GH15434 + # passing an array as a key with a MultiIndex + index = MultiIndex.from_product([[1, 2, 3], ["A", "B", "C"]]) + x = Series(index=index, data=range(9), dtype=np.float64) + y = np.array([1, 3]) + expected = Series( + data=[0, 1, 2, 6, 7, 8], + index=MultiIndex.from_product([[1, 3], ["A", "B", "C"]]), + dtype=np.float64, + ) + result = x.loc[y] + tm.assert_series_equal(result, expected) + + # empty array: + empty = np.array([]) + expected = Series( + [], + index=MultiIndex(levels=index.levels, codes=[[], []], dtype=np.float64), + dtype="float64", + ) + result = x.loc[empty] + tm.assert_series_equal(result, expected) + + # 0-dim array (scalar): + scalar = np.int64(1) + expected = Series(data=[0, 1, 2], index=["A", "B", "C"], dtype=np.float64) + result = x.loc[scalar] + tm.assert_series_equal(result, expected) + + def test_loc_multiindex_labels(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((3, 3)), + columns=[["i", "i", "j"], ["A", "A", "B"]], + index=[["i", "i", "j"], ["X", "X", "Y"]], + ) + + # the first 2 rows + expected = df.iloc[[0, 1]].droplevel(0) + result = df.loc["i"] + tm.assert_frame_equal(result, expected) + + # 2nd (last) column + expected = df.iloc[:, [2]].droplevel(0, axis=1) + result = df.loc[:, "j"] + tm.assert_frame_equal(result, expected) + + # bottom right corner + expected = df.iloc[[2], [2]].droplevel(0).droplevel(0, axis=1) + result = df.loc["j"].loc[:, "j"] + tm.assert_frame_equal(result, expected) + + # with a tuple + expected = df.iloc[[0, 1]] + result = df.loc[("i", "X")] + tm.assert_frame_equal(result, expected) + + def test_loc_multiindex_ints(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((3, 3)), + columns=[[2, 2, 4], [6, 8, 10]], + index=[[4, 4, 8], [8, 10, 12]], + ) + expected = df.iloc[[0, 1]].droplevel(0) + result = df.loc[4] + tm.assert_frame_equal(result, expected) + + def test_loc_multiindex_missing_label_raises(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((3, 3)), + columns=[[2, 2, 4], [6, 8, 10]], + index=[[4, 4, 8], [8, 10, 12]], + ) + + with pytest.raises(KeyError, match=r"^2$"): + df.loc[2] + + @pytest.mark.parametrize("key, pos", [([2, 4], [0, 1]), ([2], []), ([2, 3], [])]) + def test_loc_multiindex_list_missing_label(self, key, pos): + # GH 27148 - lists with missing labels _do_ raise + df = DataFrame( + np.random.default_rng(2).standard_normal((3, 3)), + columns=[[2, 2, 4], [6, 8, 10]], + index=[[4, 4, 8], [8, 10, 12]], + ) + + with pytest.raises(KeyError, match="not in index"): + df.loc[key] + + def test_loc_multiindex_too_many_dims_raises(self): + # GH 14885 + s = Series( + range(8), + index=MultiIndex.from_product([["a", "b"], ["c", "d"], ["e", "f"]]), + ) + + with pytest.raises(KeyError, match=r"^\('a', 'b'\)$"): + s.loc["a", "b"] + with pytest.raises(KeyError, match=r"^\('a', 'd', 'g'\)$"): + s.loc["a", "d", "g"] + with pytest.raises(IndexingError, match="Too many indexers"): + s.loc["a", "d", "g", "j"] + + def test_loc_multiindex_indexer_none(self): + # GH6788 + # multi-index indexer is None (meaning take all) + attributes = ["Attribute" + str(i) for i in range(1)] + attribute_values = ["Value" + str(i) for i in range(5)] + + index = MultiIndex.from_product([attributes, attribute_values]) + df = 0.1 * np.random.default_rng(2).standard_normal((10, 1 * 5)) + 0.5 + df = DataFrame(df, columns=index) + result = df[attributes] + tm.assert_frame_equal(result, df) + + # GH 7349 + # loc with a multi-index seems to be doing fallback + df = DataFrame( + np.arange(12).reshape(-1, 1), + index=MultiIndex.from_product([[1, 2, 3, 4], [1, 2, 3]]), + ) + + expected = df.loc[([1, 2],), :] + result = df.loc[[1, 2]] + tm.assert_frame_equal(result, expected) + + def test_loc_multiindex_incomplete(self): + # GH 7399 + # incomplete indexers + s = Series( + np.arange(15, dtype="int64"), + MultiIndex.from_product([range(5), ["a", "b", "c"]]), + ) + expected = s.loc[:, "a":"c"] + + result = s.loc[0:4, "a":"c"] + tm.assert_series_equal(result, expected) + + result = s.loc[:4, "a":"c"] + tm.assert_series_equal(result, expected) + + result = s.loc[0:, "a":"c"] + tm.assert_series_equal(result, expected) + + # GH 7400 + # multiindexer getitem with list of indexers skips wrong element + s = Series( + np.arange(15, dtype="int64"), + MultiIndex.from_product([range(5), ["a", "b", "c"]]), + ) + expected = s.iloc[[6, 7, 8, 12, 13, 14]] + result = s.loc[2:4:2, "a":"c"] + tm.assert_series_equal(result, expected) + + def test_get_loc_single_level(self, single_level_multiindex): + single_level = single_level_multiindex + s = Series( + np.random.default_rng(2).standard_normal(len(single_level)), + index=single_level, + ) + for k in single_level.values: + s[k] + + def test_loc_getitem_int_slice(self): + # GH 3053 + # loc should treat integer slices like label slices + + index = MultiIndex.from_product([[6, 7, 8], ["a", "b"]]) + df = DataFrame(np.random.default_rng(2).standard_normal((6, 6)), index, index) + result = df.loc[6:8, :] + expected = df + tm.assert_frame_equal(result, expected) + + index = MultiIndex.from_product([[10, 20, 30], ["a", "b"]]) + df = DataFrame(np.random.default_rng(2).standard_normal((6, 6)), index, index) + result = df.loc[20:30, :] + expected = df.iloc[2:] + tm.assert_frame_equal(result, expected) + + # doc examples + result = df.loc[10, :] + expected = df.iloc[0:2] + expected.index = ["a", "b"] + tm.assert_frame_equal(result, expected) + + result = df.loc[:, 10] + expected = df[10] + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "indexer_type_1", (list, tuple, set, slice, np.ndarray, Series, Index) + ) + @pytest.mark.parametrize( + "indexer_type_2", (list, tuple, set, slice, np.ndarray, Series, Index) + ) + def test_loc_getitem_nested_indexer(self, indexer_type_1, indexer_type_2): + # GH #19686 + # .loc should work with nested indexers which can be + # any list-like objects (see `is_list_like` (`pandas.api.types`)) or slices + + def convert_nested_indexer(indexer_type, keys): + if indexer_type == np.ndarray: + return np.array(keys) + if indexer_type == slice: + return slice(*keys) + return indexer_type(keys) + + a = [10, 20, 30] + b = [1, 2, 3] + index = MultiIndex.from_product([a, b]) + df = DataFrame( + np.arange(len(index), dtype="int64"), index=index, columns=["Data"] + ) + + keys = ([10, 20], [2, 3]) + types = (indexer_type_1, indexer_type_2) + + # check indexers with all the combinations of nested objects + # of all the valid types + indexer = tuple( + convert_nested_indexer(indexer_type, k) + for indexer_type, k in zip(types, keys) + ) + if indexer_type_1 is set or indexer_type_2 is set: + with pytest.raises(TypeError, match="as an indexer is not supported"): + df.loc[indexer, "Data"] + + return + else: + result = df.loc[indexer, "Data"] + expected = Series( + [1, 2, 4, 5], name="Data", index=MultiIndex.from_product(keys) + ) + + tm.assert_series_equal(result, expected) + + def test_multiindex_loc_one_dimensional_tuple(self, frame_or_series): + # GH#37711 + mi = MultiIndex.from_tuples([("a", "A"), ("b", "A")]) + obj = frame_or_series([1, 2], index=mi) + obj.loc[("a",)] = 0 + expected = frame_or_series([0, 2], index=mi) + tm.assert_equal(obj, expected) + + @pytest.mark.parametrize("indexer", [("a",), ("a")]) + def test_multiindex_one_dimensional_tuple_columns(self, indexer): + # GH#37711 + mi = MultiIndex.from_tuples([("a", "A"), ("b", "A")]) + obj = DataFrame([1, 2], index=mi) + obj.loc[indexer, :] = 0 + expected = DataFrame([0, 2], index=mi) + tm.assert_frame_equal(obj, expected) + + @pytest.mark.parametrize( + "indexer, exp_value", [(slice(None), 1.0), ((1, 2), np.nan)] + ) + def test_multiindex_setitem_columns_enlarging(self, indexer, exp_value): + # GH#39147 + mi = MultiIndex.from_tuples([(1, 2), (3, 4)]) + df = DataFrame([[1, 2], [3, 4]], index=mi, columns=["a", "b"]) + df.loc[indexer, ["c", "d"]] = 1.0 + expected = DataFrame( + [[1, 2, 1.0, 1.0], [3, 4, exp_value, exp_value]], + index=mi, + columns=["a", "b", "c", "d"], + ) + tm.assert_frame_equal(df, expected) + + def test_sorted_multiindex_after_union(self): + # GH#44752 + midx = MultiIndex.from_product( + [pd.date_range("20110101", periods=2), Index(["a", "b"])] + ) + ser1 = Series(1, index=midx) + ser2 = Series(1, index=midx[:2]) + df = pd.concat([ser1, ser2], axis=1) + expected = df.copy() + result = df.loc["2011-01-01":"2011-01-02"] + tm.assert_frame_equal(result, expected) + + df = DataFrame({0: ser1, 1: ser2}) + result = df.loc["2011-01-01":"2011-01-02"] + tm.assert_frame_equal(result, expected) + + df = pd.concat([ser1, ser2.reindex(ser1.index)], axis=1) + result = df.loc["2011-01-01":"2011-01-02"] + tm.assert_frame_equal(result, expected) + + def test_loc_no_second_level_index(self): + # GH#43599 + df = DataFrame( + index=MultiIndex.from_product([list("ab"), list("cd"), list("e")]), + columns=["Val"], + ) + res = df.loc[np.s_[:, "c", :]] + expected = DataFrame( + index=MultiIndex.from_product([list("ab"), list("e")]), columns=["Val"] + ) + tm.assert_frame_equal(res, expected) + + def test_loc_multi_index_key_error(self): + # GH 51892 + df = DataFrame( + { + (1, 2): ["a", "b", "c"], + (1, 3): ["d", "e", "f"], + (2, 2): ["g", "h", "i"], + (2, 4): ["j", "k", "l"], + } + ) + with pytest.raises(KeyError, match=r"(1, 4)"): + df.loc[0, (1, 4)] + + +@pytest.mark.parametrize( + "indexer, pos", + [ + ([], []), # empty ok + (["A"], slice(3)), + (["A", "D"], []), # "D" isn't present -> raise + (["D", "E"], []), # no values found -> raise + (["D"], []), # same, with single item list: GH 27148 + (pd.IndexSlice[:, ["foo"]], slice(2, None, 3)), + (pd.IndexSlice[:, ["foo", "bah"]], slice(2, None, 3)), + ], +) +def test_loc_getitem_duplicates_multiindex_missing_indexers(indexer, pos): + # GH 7866 + # multi-index slicing with missing indexers + idx = MultiIndex.from_product( + [["A", "B", "C"], ["foo", "bar", "baz"]], names=["one", "two"] + ) + ser = Series(np.arange(9, dtype="int64"), index=idx).sort_index() + expected = ser.iloc[pos] + + if expected.size == 0 and indexer != []: + with pytest.raises(KeyError, match=str(indexer)): + ser.loc[indexer] + elif indexer == (slice(None), ["foo", "bah"]): + # "bah" is not in idx.levels[1], raising KeyError enforced in 2.0 + with pytest.raises(KeyError, match="'bah'"): + ser.loc[indexer] + else: + result = ser.loc[indexer] + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize("columns_indexer", [([], slice(None)), (["foo"], [])]) +def test_loc_getitem_duplicates_multiindex_empty_indexer(columns_indexer): + # GH 8737 + # empty indexer + multi_index = MultiIndex.from_product((["foo", "bar", "baz"], ["alpha", "beta"])) + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 6)), + index=range(5), + columns=multi_index, + ) + df = df.sort_index(level=0, axis=1) + + expected = DataFrame(index=range(5), columns=multi_index.reindex([])[0]) + result = df.loc[:, columns_indexer] + tm.assert_frame_equal(result, expected) + + +def test_loc_getitem_duplicates_multiindex_non_scalar_type_object(): + # regression from < 0.14.0 + # GH 7914 + df = DataFrame( + [[np.mean, np.median], ["mean", "median"]], + columns=MultiIndex.from_tuples([("functs", "mean"), ("functs", "median")]), + index=["function", "name"], + ) + result = df.loc["function", ("functs", "mean")] + expected = np.mean + assert result == expected + + +def test_loc_getitem_tuple_plus_slice(): + # GH 671 + df = DataFrame( + { + "a": np.arange(10), + "b": np.arange(10), + "c": np.random.default_rng(2).standard_normal(10), + "d": np.random.default_rng(2).standard_normal(10), + } + ).set_index(["a", "b"]) + expected = df.loc[0, 0] + result = df.loc[(0, 0), :] + tm.assert_series_equal(result, expected) + + +def test_loc_getitem_int(frame_random_data_integer_multi_index): + df = frame_random_data_integer_multi_index + result = df.loc[1] + expected = df[-3:] + expected.index = expected.index.droplevel(0) + tm.assert_frame_equal(result, expected) + + +def test_loc_getitem_int_raises_exception(frame_random_data_integer_multi_index): + df = frame_random_data_integer_multi_index + with pytest.raises(KeyError, match=r"^3$"): + df.loc[3] + + +def test_loc_getitem_lowerdim_corner(multiindex_dataframe_random_data): + df = multiindex_dataframe_random_data + + # test setup - check key not in dataframe + with pytest.raises(KeyError, match=r"^\('bar', 'three'\)$"): + df.loc[("bar", "three"), "B"] + + # in theory should be inserting in a sorted space???? + df.loc[("bar", "three"), "B"] = 0 + expected = 0 + result = df.sort_index().loc[("bar", "three"), "B"] + assert result == expected + + +def test_loc_setitem_single_column_slice(): + # case from https://github.com/pandas-dev/pandas/issues/27841 + df = DataFrame( + "string", + index=list("abcd"), + columns=MultiIndex.from_product([["Main"], ("another", "one")]), + ) + df["labels"] = "a" + df.loc[:, "labels"] = df.index + tm.assert_numpy_array_equal(np.asarray(df["labels"]), np.asarray(df.index)) + + # test with non-object block + df = DataFrame( + np.nan, + index=range(4), + columns=MultiIndex.from_tuples([("A", "1"), ("A", "2"), ("B", "1")]), + ) + expected = df.copy() + df.loc[:, "B"] = np.arange(4) + expected.iloc[:, 2] = np.arange(4) + tm.assert_frame_equal(df, expected) + + +def test_loc_nan_multiindex(using_infer_string): + # GH 5286 + tups = [ + ("Good Things", "C", np.nan), + ("Good Things", "R", np.nan), + ("Bad Things", "C", np.nan), + ("Bad Things", "T", np.nan), + ("Okay Things", "N", "B"), + ("Okay Things", "N", "D"), + ("Okay Things", "B", np.nan), + ("Okay Things", "D", np.nan), + ] + df = DataFrame( + np.ones((8, 4)), + columns=Index(["d1", "d2", "d3", "d4"]), + index=MultiIndex.from_tuples(tups, names=["u1", "u2", "u3"]), + ) + result = df.loc["Good Things"].loc["C"] + expected = DataFrame( + np.ones((1, 4)), + index=Index( + [np.nan], + dtype="object" if not using_infer_string else "str", + name="u3", + ), + columns=Index(["d1", "d2", "d3", "d4"]), + ) + tm.assert_frame_equal(result, expected) + + +def test_loc_period_string_indexing(): + # GH 9892 + a = pd.period_range("2013Q1", "2013Q4", freq="Q") + i = (1111, 2222, 3333) + idx = MultiIndex.from_product((a, i), names=("Period", "CVR")) + df = DataFrame( + index=idx, + columns=( + "OMS", + "OMK", + "RES", + "DRIFT_IND", + "OEVRIG_IND", + "FIN_IND", + "VARE_UD", + "LOEN_UD", + "FIN_UD", + ), + ) + result = df.loc[("2013Q1", 1111), "OMS"] + + alt = df.loc[(a[0], 1111), "OMS"] + assert np.isnan(alt) + + # Because the resolution of the string matches, it is an exact lookup, + # not a slice + assert np.isnan(result) + + alt = df.loc[("2013Q1", 1111), "OMS"] + assert np.isnan(alt) + + +def test_loc_datetime_mask_slicing(): + # GH 16699 + dt_idx = pd.to_datetime(["2017-05-04", "2017-05-05"]) + m_idx = MultiIndex.from_product([dt_idx, dt_idx], names=["Idx1", "Idx2"]) + df = DataFrame( + data=[[1, 2], [3, 4], [5, 6], [7, 6]], index=m_idx, columns=["C1", "C2"] + ) + result = df.loc[(dt_idx[0], (df.index.get_level_values(1) > "2017-05-04")), "C1"] + expected = Series( + [3], + name="C1", + index=MultiIndex.from_tuples( + [(pd.Timestamp("2017-05-04"), pd.Timestamp("2017-05-05"))], + names=["Idx1", "Idx2"], + ), + ) + tm.assert_series_equal(result, expected) + + +def test_loc_datetime_series_tuple_slicing(): + # https://github.com/pandas-dev/pandas/issues/35858 + date = pd.Timestamp("2000") + ser = Series( + 1, + index=MultiIndex.from_tuples([("a", date)], names=["a", "b"]), + name="c", + ) + result = ser.loc[:, [date]] + tm.assert_series_equal(result, ser) + + +def test_loc_with_mi_indexer(): + # https://github.com/pandas-dev/pandas/issues/35351 + df = DataFrame( + data=[["a", 1], ["a", 0], ["b", 1], ["c", 2]], + index=MultiIndex.from_tuples( + [(0, 1), (1, 0), (1, 1), (1, 1)], names=["index", "date"] + ), + columns=["author", "price"], + ) + idx = MultiIndex.from_tuples([(0, 1), (1, 1)], names=["index", "date"]) + result = df.loc[idx, :] + expected = DataFrame( + [["a", 1], ["b", 1], ["c", 2]], + index=MultiIndex.from_tuples([(0, 1), (1, 1), (1, 1)], names=["index", "date"]), + columns=["author", "price"], + ) + tm.assert_frame_equal(result, expected) + + +def test_loc_mi_with_level1_named_0(): + # GH#37194 + dti = pd.date_range("2016-01-01", periods=3, tz="US/Pacific") + + ser = Series(range(3), index=dti) + df = ser.to_frame() + df[1] = dti + + df2 = df.set_index(0, append=True) + assert df2.index.names == (None, 0) + df2.index.get_loc(dti[0]) # smoke test + + result = df2.loc[dti[0]] + expected = df2.iloc[[0]].droplevel(None) + tm.assert_frame_equal(result, expected) + + ser2 = df2[1] + assert ser2.index.names == (None, 0) + + result = ser2.loc[dti[0]] + expected = ser2.iloc[[0]].droplevel(None) + tm.assert_series_equal(result, expected) + + +def test_getitem_str_slice(): + # GH#15928 + df = DataFrame( + [ + ["20160525 13:30:00.023", "MSFT", "51.95", "51.95"], + ["20160525 13:30:00.048", "GOOG", "720.50", "720.93"], + ["20160525 13:30:00.076", "AAPL", "98.55", "98.56"], + ["20160525 13:30:00.131", "AAPL", "98.61", "98.62"], + ["20160525 13:30:00.135", "MSFT", "51.92", "51.95"], + ["20160525 13:30:00.135", "AAPL", "98.61", "98.62"], + ], + columns="time,ticker,bid,ask".split(","), + ) + df2 = df.set_index(["ticker", "time"]).sort_index() + + res = df2.loc[("AAPL", slice("2016-05-25 13:30:00")), :].droplevel(0) + expected = df2.loc["AAPL"].loc[slice("2016-05-25 13:30:00"), :] + tm.assert_frame_equal(res, expected) + + +def test_3levels_leading_period_index(): + # GH#24091 + pi = pd.PeriodIndex( + ["20181101 1100", "20181101 1200", "20181102 1300", "20181102 1400"], + name="datetime", + freq="D", + ) + lev2 = ["A", "A", "Z", "W"] + lev3 = ["B", "C", "Q", "F"] + mi = MultiIndex.from_arrays([pi, lev2, lev3]) + + ser = Series(range(4), index=mi, dtype=np.float64) + result = ser.loc[(pi[0], "A", "B")] + assert result == 0.0 + + +class TestKeyErrorsWithMultiIndex: + def test_missing_keys_raises_keyerror(self): + # GH#27420 KeyError, not TypeError + df = DataFrame(np.arange(12).reshape(4, 3), columns=["A", "B", "C"]) + df2 = df.set_index(["A", "B"]) + + with pytest.raises(KeyError, match="1"): + df2.loc[(1, 6)] + + def test_missing_key_raises_keyerror2(self): + # GH#21168 KeyError, not "IndexingError: Too many indexers" + ser = Series(-1, index=MultiIndex.from_product([[0, 1]] * 2)) + + with pytest.raises(KeyError, match=r"\(0, 3\)"): + ser.loc[0, 3] + + def test_missing_key_combination(self): + # GH: 19556 + mi = MultiIndex.from_arrays( + [ + np.array(["a", "a", "b", "b"]), + np.array(["1", "2", "2", "3"]), + np.array(["c", "d", "c", "d"]), + ], + names=["one", "two", "three"], + ) + df = DataFrame(np.random.default_rng(2).random((4, 3)), index=mi) + msg = r"\('b', '1', slice\(None, None, None\)\)" + with pytest.raises(KeyError, match=msg): + df.loc[("b", "1", slice(None)), :] + with pytest.raises(KeyError, match=msg): + df.index.get_locs(("b", "1", slice(None))) + with pytest.raises(KeyError, match=r"\('b', '1'\)"): + df.loc[("b", "1"), :] + + +def test_getitem_loc_commutability(multiindex_year_month_day_dataframe_random_data): + df = multiindex_year_month_day_dataframe_random_data + ser = df["A"] + result = ser[2000, 5] + expected = df.loc[2000, 5]["A"] + tm.assert_series_equal(result, expected) + + +def test_loc_with_nan(): + # GH: 27104 + df = DataFrame( + {"col": [1, 2, 5], "ind1": ["a", "d", np.nan], "ind2": [1, 4, 5]} + ).set_index(["ind1", "ind2"]) + result = df.loc[["a"]] + expected = DataFrame( + {"col": [1]}, index=MultiIndex.from_tuples([("a", 1)], names=["ind1", "ind2"]) + ) + tm.assert_frame_equal(result, expected) + + result = df.loc["a"] + expected = DataFrame({"col": [1]}, index=Index([1], name="ind2")) + tm.assert_frame_equal(result, expected) + + +def test_getitem_non_found_tuple(): + # GH: 25236 + df = DataFrame([[1, 2, 3, 4]], columns=["a", "b", "c", "d"]).set_index( + ["a", "b", "c"] + ) + with pytest.raises(KeyError, match=r"\(2\.0, 2\.0, 3\.0\)"): + df.loc[(2.0, 2.0, 3.0)] + + +def test_get_loc_datetime_index(): + # GH#24263 + index = pd.date_range("2001-01-01", periods=100) + mi = MultiIndex.from_arrays([index]) + # Check if get_loc matches for Index and MultiIndex + assert mi.get_loc("2001-01") == slice(0, 31, None) + assert index.get_loc("2001-01") == slice(0, 31, None) + + loc = mi[::2].get_loc("2001-01") + expected = index[::2].get_loc("2001-01") + assert loc == expected + + loc = mi.repeat(2).get_loc("2001-01") + expected = index.repeat(2).get_loc("2001-01") + assert loc == expected + + loc = mi.append(mi).get_loc("2001-01") + expected = index.append(index).get_loc("2001-01") + # TODO: standardize return type for MultiIndex.get_loc + tm.assert_numpy_array_equal(loc.nonzero()[0], expected) + + +def test_loc_setitem_indexer_differently_ordered(): + # GH#34603 + mi = MultiIndex.from_product([["a", "b"], [0, 1]]) + df = DataFrame([[1, 2], [3, 4], [5, 6], [7, 8]], index=mi) + + indexer = ("a", [1, 0]) + df.loc[indexer, :] = np.array([[9, 10], [11, 12]]) + expected = DataFrame([[11, 12], [9, 10], [5, 6], [7, 8]], index=mi) + tm.assert_frame_equal(df, expected) + + +def test_loc_getitem_index_differently_ordered_slice_none(): + # GH#31330 + df = DataFrame( + [[1, 2], [3, 4], [5, 6], [7, 8]], + index=[["a", "a", "b", "b"], [1, 2, 1, 2]], + columns=["a", "b"], + ) + result = df.loc[(slice(None), [2, 1]), :] + expected = DataFrame( + [[3, 4], [7, 8], [1, 2], [5, 6]], + index=[["a", "b", "a", "b"], [2, 2, 1, 1]], + columns=["a", "b"], + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize("indexer", [[1, 2, 7, 6, 2, 3, 8, 7], [1, 2, 7, 6, 3, 8]]) +def test_loc_getitem_index_differently_ordered_slice_none_duplicates(indexer): + # GH#40978 + df = DataFrame( + [1] * 8, + index=MultiIndex.from_tuples( + [(1, 1), (1, 2), (1, 7), (1, 6), (2, 2), (2, 3), (2, 8), (2, 7)] + ), + columns=["a"], + ) + result = df.loc[(slice(None), indexer), :] + expected = DataFrame( + [1] * 8, + index=[[1, 1, 2, 1, 2, 1, 2, 2], [1, 2, 2, 7, 7, 6, 3, 8]], + columns=["a"], + ) + tm.assert_frame_equal(result, expected) + + result = df.loc[df.index.isin(indexer, level=1), :] + tm.assert_frame_equal(result, df) + + +def test_loc_getitem_drops_levels_for_one_row_dataframe(): + # GH#10521 "x" and "z" are both scalar indexing, so those levels are dropped + mi = MultiIndex.from_arrays([["x"], ["y"], ["z"]], names=["a", "b", "c"]) + df = DataFrame({"d": [0]}, index=mi) + expected = df.droplevel([0, 2]) + result = df.loc["x", :, "z"] + tm.assert_frame_equal(result, expected) + + ser = Series([0], index=mi) + result = ser.loc["x", :, "z"] + expected = Series([0], index=Index(["y"], name="b")) + tm.assert_series_equal(result, expected) + + +def test_mi_columns_loc_list_label_order(): + # GH 10710 + cols = MultiIndex.from_product([["A", "B", "C"], [1, 2]]) + df = DataFrame(np.zeros((5, 6)), columns=cols) + result = df.loc[:, ["B", "A"]] + expected = DataFrame( + np.zeros((5, 4)), + columns=MultiIndex.from_tuples([("B", 1), ("B", 2), ("A", 1), ("A", 2)]), + ) + tm.assert_frame_equal(result, expected) + + +def test_mi_partial_indexing_list_raises(): + # GH 13501 + frame = DataFrame( + np.arange(12).reshape((4, 3)), + index=[["a", "a", "b", "b"], [1, 2, 1, 2]], + columns=[["Ohio", "Ohio", "Colorado"], ["Green", "Red", "Green"]], + ) + frame.index.names = ["key1", "key2"] + frame.columns.names = ["state", "color"] + with pytest.raises(KeyError, match="\\[2\\] not in index"): + frame.loc[["b", 2], "Colorado"] + + +def test_mi_indexing_list_nonexistent_raises(): + # GH 15452 + s = Series(range(4), index=MultiIndex.from_product([[1, 2], ["a", "b"]])) + with pytest.raises(KeyError, match="\\['not' 'found'\\] not in index"): + s.loc[["not", "found"]] + + +def test_mi_add_cell_missing_row_non_unique(): + # GH 16018 + result = DataFrame( + [[1, 2, 5, 6], [3, 4, 7, 8]], + index=["a", "a"], + columns=MultiIndex.from_product([[1, 2], ["A", "B"]]), + ) + result.loc["c"] = -1 + result.loc["c", (1, "A")] = 3 + result.loc["d", (1, "A")] = 3 + expected = DataFrame( + [ + [1.0, 2.0, 5.0, 6.0], + [3.0, 4.0, 7.0, 8.0], + [3.0, -1.0, -1, -1], + [3.0, np.nan, np.nan, np.nan], + ], + index=["a", "a", "c", "d"], + columns=MultiIndex.from_product([[1, 2], ["A", "B"]]), + ) + tm.assert_frame_equal(result, expected) + + +def test_loc_get_scalar_casting_to_float(): + # GH#41369 + df = DataFrame( + {"a": 1.0, "b": 2}, index=MultiIndex.from_arrays([[3], [4]], names=["c", "d"]) + ) + result = df.loc[(3, 4), "b"] + assert result == 2 + assert isinstance(result, np.int64) + result = df.loc[[(3, 4)], "b"].iloc[0] + assert result == 2 + assert isinstance(result, np.int64) + + +def test_loc_empty_single_selector_with_names(): + # GH 19517 + idx = MultiIndex.from_product([["a", "b"], ["A", "B"]], names=[1, 0]) + s2 = Series(index=idx, dtype=np.float64) + result = s2.loc["a"] + expected = Series([np.nan, np.nan], index=Index(["A", "B"], name=0)) + tm.assert_series_equal(result, expected) + + +def test_loc_keyerror_rightmost_key_missing(): + # GH 20951 + + df = DataFrame( + { + "A": [100, 100, 200, 200, 300, 300], + "B": [10, 10, 20, 21, 31, 33], + "C": range(6), + } + ) + df = df.set_index(["A", "B"]) + with pytest.raises(KeyError, match="^1$"): + df.loc[(100, 1)] + + +def test_multindex_series_loc_with_tuple_label(): + # GH#43908 + mi = MultiIndex.from_tuples([(1, 2), (3, (4, 5))]) + ser = Series([1, 2], index=mi) + result = ser.loc[(3, (4, 5))] + assert result == 2 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_multiindex.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_multiindex.py new file mode 100644 index 0000000000000000000000000000000000000000..36cc8316ea5ff4f7a5d264748e6c202d723129d9 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_multiindex.py @@ -0,0 +1,235 @@ +import numpy as np +import pytest + +import pandas._libs.index as libindex +from pandas.errors import PerformanceWarning + +import pandas as pd +from pandas import ( + CategoricalDtype, + DataFrame, + Index, + MultiIndex, + Series, +) +import pandas._testing as tm +from pandas.core.arrays.boolean import BooleanDtype + + +class TestMultiIndexBasic: + def test_multiindex_perf_warn(self): + df = DataFrame( + { + "jim": [0, 0, 1, 1], + "joe": ["x", "x", "z", "y"], + "jolie": np.random.default_rng(2).random(4), + } + ).set_index(["jim", "joe"]) + + with tm.assert_produces_warning(PerformanceWarning): + df.loc[(1, "z")] + + df = df.iloc[[2, 1, 3, 0]] + with tm.assert_produces_warning(PerformanceWarning): + df.loc[(0,)] + + @pytest.mark.parametrize("offset", [-5, 5]) + def test_indexing_over_hashtable_size_cutoff(self, monkeypatch, offset): + size_cutoff = 20 + n = size_cutoff + offset + + with monkeypatch.context(): + monkeypatch.setattr(libindex, "_SIZE_CUTOFF", size_cutoff) + s = Series(np.arange(n), MultiIndex.from_arrays((["a"] * n, np.arange(n)))) + + # hai it works! + assert s[("a", 5)] == 5 + assert s[("a", 6)] == 6 + assert s[("a", 7)] == 7 + + def test_multi_nan_indexing(self): + # GH 3588 + df = DataFrame( + { + "a": ["R1", "R2", np.nan, "R4"], + "b": ["C1", "C2", "C3", "C4"], + "c": [10, 15, np.nan, 20], + } + ) + result = df.set_index(["a", "b"], drop=False) + expected = DataFrame( + { + "a": ["R1", "R2", np.nan, "R4"], + "b": ["C1", "C2", "C3", "C4"], + "c": [10, 15, np.nan, 20], + }, + index=[ + Index(["R1", "R2", np.nan, "R4"], name="a"), + Index(["C1", "C2", "C3", "C4"], name="b"), + ], + ) + tm.assert_frame_equal(result, expected) + + def test_exclusive_nat_column_indexing(self): + # GH 38025 + # test multi indexing when one column exclusively contains NaT values + df = DataFrame( + { + "a": [pd.NaT, pd.NaT, pd.NaT, pd.NaT], + "b": ["C1", "C2", "C3", "C4"], + "c": [10, 15, np.nan, 20], + } + ) + df = df.set_index(["a", "b"]) + expected = DataFrame( + { + "c": [10, 15, np.nan, 20], + }, + index=[ + Index([pd.NaT, pd.NaT, pd.NaT, pd.NaT], name="a"), + Index(["C1", "C2", "C3", "C4"], name="b"), + ], + ) + tm.assert_frame_equal(df, expected) + + def test_nested_tuples_duplicates(self): + # GH#30892 + + dti = pd.to_datetime(["20190101", "20190101", "20190102"]) + idx = Index(["a", "a", "c"]) + mi = MultiIndex.from_arrays([dti, idx], names=["index1", "index2"]) + + df = DataFrame({"c1": [1, 2, 3], "c2": [np.nan, np.nan, np.nan]}, index=mi) + + expected = DataFrame({"c1": df["c1"], "c2": [1.0, 1.0, np.nan]}, index=mi) + + df2 = df.copy(deep=True) + df2.loc[(dti[0], "a"), "c2"] = 1.0 + tm.assert_frame_equal(df2, expected) + + df3 = df.copy(deep=True) + df3.loc[[(dti[0], "a")], "c2"] = 1.0 + tm.assert_frame_equal(df3, expected) + + def test_multiindex_with_datatime_level_preserves_freq(self): + # https://github.com/pandas-dev/pandas/issues/35563 + idx = Index(range(2), name="A") + dti = pd.date_range("2020-01-01", periods=7, freq="D", name="B") + mi = MultiIndex.from_product([idx, dti]) + df = DataFrame(np.random.default_rng(2).standard_normal((14, 2)), index=mi) + result = df.loc[0].index + tm.assert_index_equal(result, dti) + assert result.freq == dti.freq + + def test_multiindex_complex(self): + # GH#42145 + complex_data = [1 + 2j, 4 - 3j, 10 - 1j] + non_complex_data = [3, 4, 5] + result = DataFrame( + { + "x": complex_data, + "y": non_complex_data, + "z": non_complex_data, + } + ) + result.set_index(["x", "y"], inplace=True) + expected = DataFrame( + {"z": non_complex_data}, + index=MultiIndex.from_arrays( + [complex_data, non_complex_data], + names=("x", "y"), + ), + ) + tm.assert_frame_equal(result, expected) + + def test_rename_multiindex_with_duplicates(self): + # GH 38015 + mi = MultiIndex.from_tuples([("A", "cat"), ("B", "cat"), ("B", "cat")]) + df = DataFrame(index=mi) + df = df.rename(index={"A": "Apple"}, level=0) + + mi2 = MultiIndex.from_tuples([("Apple", "cat"), ("B", "cat"), ("B", "cat")]) + expected = DataFrame(index=mi2) + tm.assert_frame_equal(df, expected) + + def test_series_align_multiindex_with_nan_overlap_only(self): + # GH 38439 + mi1 = MultiIndex.from_arrays([[81.0, np.nan], [np.nan, np.nan]]) + mi2 = MultiIndex.from_arrays([[np.nan, 82.0], [np.nan, np.nan]]) + ser1 = Series([1, 2], index=mi1) + ser2 = Series([1, 2], index=mi2) + result1, result2 = ser1.align(ser2) + + mi = MultiIndex.from_arrays([[81.0, 82.0, np.nan], [np.nan, np.nan, np.nan]]) + expected1 = Series([1.0, np.nan, 2.0], index=mi) + expected2 = Series([np.nan, 2.0, 1.0], index=mi) + + tm.assert_series_equal(result1, expected1) + tm.assert_series_equal(result2, expected2) + + def test_series_align_multiindex_with_nan(self): + # GH 38439 + mi1 = MultiIndex.from_arrays([[81.0, np.nan], [np.nan, np.nan]]) + mi2 = MultiIndex.from_arrays([[np.nan, 81.0], [np.nan, np.nan]]) + ser1 = Series([1, 2], index=mi1) + ser2 = Series([1, 2], index=mi2) + result1, result2 = ser1.align(ser2) + + mi = MultiIndex.from_arrays([[81.0, np.nan], [np.nan, np.nan]]) + expected1 = Series([1, 2], index=mi) + expected2 = Series([2, 1], index=mi) + + tm.assert_series_equal(result1, expected1) + tm.assert_series_equal(result2, expected2) + + def test_nunique_smoke(self): + # GH 34019 + n = DataFrame([[1, 2], [1, 2]]).set_index([0, 1]).index.nunique() + assert n == 1 + + def test_multiindex_repeated_keys(self): + # GH19414 + tm.assert_series_equal( + Series([1, 2], MultiIndex.from_arrays([["a", "b"]])).loc[ + ["a", "a", "b", "b"] + ], + Series([1, 1, 2, 2], MultiIndex.from_arrays([["a", "a", "b", "b"]])), + ) + + def test_multiindex_with_na_missing_key(self): + # GH46173 + df = DataFrame.from_dict( + { + ("foo",): [1, 2, 3], + ("bar",): [5, 6, 7], + (None,): [8, 9, 0], + } + ) + with pytest.raises(KeyError, match="missing_key"): + df[[("missing_key",)]] + + def test_multiindex_dtype_preservation(self): + # GH51261 + columns = MultiIndex.from_tuples([("A", "B")], names=["lvl1", "lvl2"]) + df = DataFrame(["value"], columns=columns).astype("category") + df_no_multiindex = df["A"] + assert isinstance(df_no_multiindex["B"].dtype, CategoricalDtype) + + # geopandas 1763 analogue + df = DataFrame( + [[1, 0], [0, 1]], + columns=[ + ["foo", "foo"], + ["location", "location"], + ["x", "y"], + ], + ).assign(bools=Series([True, False], dtype="boolean")) + assert isinstance(df["bools"].dtype, BooleanDtype) + + def test_multiindex_from_tuples_with_nan(self): + # GH#23578 + result = MultiIndex.from_tuples([("a", "b", "c"), np.nan, ("d", "", "")]) + expected = MultiIndex.from_tuples( + [("a", "b", "c"), (np.nan, np.nan, np.nan), ("d", "", "")] + ) + tm.assert_index_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_partial.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_partial.py new file mode 100644 index 0000000000000000000000000000000000000000..fdf88b2a97e461702b63bbfad31905682ff66b35 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_partial.py @@ -0,0 +1,269 @@ +import numpy as np +import pytest + +import pandas.util._test_decorators as td + +from pandas import ( + DataFrame, + DatetimeIndex, + MultiIndex, + date_range, +) +import pandas._testing as tm + + +class TestMultiIndexPartial: + def test_getitem_partial_int(self): + # GH 12416 + # with single item + l1 = [10, 20] + l2 = ["a", "b"] + df = DataFrame(index=range(2), columns=MultiIndex.from_product([l1, l2])) + expected = DataFrame(index=range(2), columns=l2) + result = df[20] + tm.assert_frame_equal(result, expected) + + # with list + expected = DataFrame( + index=range(2), columns=MultiIndex.from_product([l1[1:], l2]) + ) + result = df[[20]] + tm.assert_frame_equal(result, expected) + + # missing item: + with pytest.raises(KeyError, match="1"): + df[1] + with pytest.raises(KeyError, match=r"'\[1\] not in index'"): + df[[1]] + + def test_series_slice_partial(self): + pass + + def test_xs_partial( + self, + multiindex_dataframe_random_data, + multiindex_year_month_day_dataframe_random_data, + ): + frame = multiindex_dataframe_random_data + ymd = multiindex_year_month_day_dataframe_random_data + result = frame.xs("foo") + result2 = frame.loc["foo"] + expected = frame.T["foo"].T + tm.assert_frame_equal(result, expected) + tm.assert_frame_equal(result, result2) + + result = ymd.xs((2000, 4)) + expected = ymd.loc[2000, 4] + tm.assert_frame_equal(result, expected) + + # ex from #1796 + index = MultiIndex( + levels=[["foo", "bar"], ["one", "two"], [-1, 1]], + codes=[ + [0, 0, 0, 0, 1, 1, 1, 1], + [0, 0, 1, 1, 0, 0, 1, 1], + [0, 1, 0, 1, 0, 1, 0, 1], + ], + ) + df = DataFrame( + np.random.default_rng(2).standard_normal((8, 4)), + index=index, + columns=list("abcd"), + ) + + result = df.xs(("foo", "one")) + expected = df.loc["foo", "one"] + tm.assert_frame_equal(result, expected) + + def test_getitem_partial(self, multiindex_year_month_day_dataframe_random_data): + ymd = multiindex_year_month_day_dataframe_random_data + ymd = ymd.T + result = ymd[2000, 2] + + expected = ymd.reindex(columns=ymd.columns[ymd.columns.codes[1] == 1]) + expected.columns = expected.columns.droplevel(0).droplevel(0) + tm.assert_frame_equal(result, expected) + + def test_fancy_slice_partial( + self, + multiindex_dataframe_random_data, + multiindex_year_month_day_dataframe_random_data, + ): + frame = multiindex_dataframe_random_data + result = frame.loc["bar":"baz"] + expected = frame[3:7] + tm.assert_frame_equal(result, expected) + + ymd = multiindex_year_month_day_dataframe_random_data + result = ymd.loc[(2000, 2):(2000, 4)] + lev = ymd.index.codes[1] + expected = ymd[(lev >= 1) & (lev <= 3)] + tm.assert_frame_equal(result, expected) + + def test_getitem_partial_column_select(self): + idx = MultiIndex( + codes=[[0, 0, 0], [0, 1, 1], [1, 0, 1]], + levels=[["a", "b"], ["x", "y"], ["p", "q"]], + ) + df = DataFrame(np.random.default_rng(2).random((3, 2)), index=idx) + + result = df.loc[("a", "y"), :] + expected = df.loc[("a", "y")] + tm.assert_frame_equal(result, expected) + + result = df.loc[("a", "y"), [1, 0]] + expected = df.loc[("a", "y")][[1, 0]] + tm.assert_frame_equal(result, expected) + + with pytest.raises(KeyError, match=r"\('a', 'foo'\)"): + df.loc[("a", "foo"), :] + + # TODO(ArrayManager) rewrite test to not use .values + # exp.loc[2000, 4].values[:] select multiple columns -> .values is not a view + @td.skip_array_manager_invalid_test + def test_partial_set( + self, + multiindex_year_month_day_dataframe_random_data, + using_copy_on_write, + warn_copy_on_write, + ): + # GH #397 + ymd = multiindex_year_month_day_dataframe_random_data + df = ymd.copy() + exp = ymd.copy() + df.loc[2000, 4] = 0 + exp.iloc[65:85] = 0 + tm.assert_frame_equal(df, exp) + + if using_copy_on_write: + with tm.raises_chained_assignment_error(): + df["A"].loc[2000, 4] = 1 + df.loc[(2000, 4), "A"] = 1 + else: + with tm.raises_chained_assignment_error(): + df["A"].loc[2000, 4] = 1 + exp.iloc[65:85, 0] = 1 + tm.assert_frame_equal(df, exp) + + df.loc[2000] = 5 + exp.iloc[:100] = 5 + tm.assert_frame_equal(df, exp) + + # this works...for now + with tm.raises_chained_assignment_error(): + df["A"].iloc[14] = 5 + if using_copy_on_write: + assert df["A"].iloc[14] == exp["A"].iloc[14] + else: + assert df["A"].iloc[14] == 5 + + @pytest.mark.parametrize("dtype", [int, float]) + def test_getitem_intkey_leading_level( + self, multiindex_year_month_day_dataframe_random_data, dtype + ): + # GH#33355 dont fall-back to positional when leading level is int + ymd = multiindex_year_month_day_dataframe_random_data + levels = ymd.index.levels + ymd.index = ymd.index.set_levels([levels[0].astype(dtype)] + levels[1:]) + ser = ymd["A"] + mi = ser.index + assert isinstance(mi, MultiIndex) + if dtype is int: + assert mi.levels[0].dtype == np.dtype(int) + else: + assert mi.levels[0].dtype == np.float64 + + assert 14 not in mi.levels[0] + assert not mi.levels[0]._should_fallback_to_positional + assert not mi._should_fallback_to_positional + + with pytest.raises(KeyError, match="14"): + ser[14] + + # --------------------------------------------------------------------- + + def test_setitem_multiple_partial(self, multiindex_dataframe_random_data): + frame = multiindex_dataframe_random_data + expected = frame.copy() + result = frame.copy() + result.loc[["foo", "bar"]] = 0 + expected.loc["foo"] = 0 + expected.loc["bar"] = 0 + tm.assert_frame_equal(result, expected) + + expected = frame.copy() + result = frame.copy() + result.loc["foo":"bar"] = 0 + expected.loc["foo"] = 0 + expected.loc["bar"] = 0 + tm.assert_frame_equal(result, expected) + + expected = frame["A"].copy() + result = frame["A"].copy() + result.loc[["foo", "bar"]] = 0 + expected.loc["foo"] = 0 + expected.loc["bar"] = 0 + tm.assert_series_equal(result, expected) + + expected = frame["A"].copy() + result = frame["A"].copy() + result.loc["foo":"bar"] = 0 + expected.loc["foo"] = 0 + expected.loc["bar"] = 0 + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize( + "indexer, exp_idx, exp_values", + [ + ( + slice("2019-2", None), + DatetimeIndex(["2019-02-01"], dtype="M8[ns]"), + [2, 3], + ), + ( + slice(None, "2019-2"), + date_range("2019", periods=2, freq="MS"), + [0, 1, 2, 3], + ), + ], + ) + def test_partial_getitem_loc_datetime(self, indexer, exp_idx, exp_values): + # GH: 25165 + date_idx = date_range("2019", periods=2, freq="MS") + df = DataFrame( + list(range(4)), + index=MultiIndex.from_product([date_idx, [0, 1]], names=["x", "y"]), + ) + expected = DataFrame( + exp_values, + index=MultiIndex.from_product([exp_idx, [0, 1]], names=["x", "y"]), + ) + result = df[indexer] + tm.assert_frame_equal(result, expected) + result = df.loc[indexer] + tm.assert_frame_equal(result, expected) + + result = df.loc(axis=0)[indexer] + tm.assert_frame_equal(result, expected) + + result = df.loc[indexer, :] + tm.assert_frame_equal(result, expected) + + df2 = df.swaplevel(0, 1).sort_index() + expected = expected.swaplevel(0, 1).sort_index() + + result = df2.loc[:, indexer, :] + tm.assert_frame_equal(result, expected) + + +def test_loc_getitem_partial_both_axis(): + # gh-12660 + iterables = [["a", "b"], [2, 1]] + columns = MultiIndex.from_product(iterables, names=["col1", "col2"]) + rows = MultiIndex.from_product(iterables, names=["row1", "row2"]) + df = DataFrame( + np.random.default_rng(2).standard_normal((4, 4)), index=rows, columns=columns + ) + expected = df.iloc[:2, 2:].droplevel("row1").droplevel("col1", axis=1) + result = df.loc["a", "b"] + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_setitem.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_setitem.py new file mode 100644 index 0000000000000000000000000000000000000000..53ad4d6b41687e8e778710d1de22c19ebbfd3495 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_setitem.py @@ -0,0 +1,589 @@ +import numpy as np +import pytest + +from pandas.errors import SettingWithCopyError +import pandas.util._test_decorators as td + +import pandas as pd +from pandas import ( + DataFrame, + MultiIndex, + Series, + date_range, + isna, + notna, +) +import pandas._testing as tm + + +def assert_equal(a, b): + assert a == b + + +class TestMultiIndexSetItem: + def check(self, target, indexers, value, compare_fn=assert_equal, expected=None): + target.loc[indexers] = value + result = target.loc[indexers] + if expected is None: + expected = value + compare_fn(result, expected) + + def test_setitem_multiindex(self): + # GH#7190 + cols = ["A", "w", "l", "a", "x", "X", "d", "profit"] + index = MultiIndex.from_product( + [np.arange(0, 100), np.arange(0, 80)], names=["time", "firm"] + ) + t, n = 0, 2 + + df = DataFrame( + np.nan, + columns=cols, + index=index, + ) + self.check(target=df, indexers=((t, n), "X"), value=0) + + df = DataFrame(-999, columns=cols, index=index) + self.check(target=df, indexers=((t, n), "X"), value=1) + + df = DataFrame(columns=cols, index=index) + self.check(target=df, indexers=((t, n), "X"), value=2) + + # gh-7218: assigning with 0-dim arrays + df = DataFrame(-999, columns=cols, index=index) + self.check( + target=df, + indexers=((t, n), "X"), + value=np.array(3), + expected=3, + ) + + def test_setitem_multiindex2(self): + # GH#5206 + df = DataFrame( + np.arange(25).reshape(5, 5), columns="A,B,C,D,E".split(","), dtype=float + ) + df["F"] = 99 + row_selection = df["A"] % 2 == 0 + col_selection = ["B", "C"] + df.loc[row_selection, col_selection] = df["F"] + output = DataFrame(99.0, index=[0, 2, 4], columns=["B", "C"]) + tm.assert_frame_equal(df.loc[row_selection, col_selection], output) + self.check( + target=df, + indexers=(row_selection, col_selection), + value=df["F"], + compare_fn=tm.assert_frame_equal, + expected=output, + ) + + def test_setitem_multiindex3(self): + # GH#11372 + idx = MultiIndex.from_product( + [["A", "B", "C"], date_range("2015-01-01", "2015-04-01", freq="MS")] + ) + cols = MultiIndex.from_product( + [["foo", "bar"], date_range("2016-01-01", "2016-02-01", freq="MS")] + ) + + df = DataFrame( + np.random.default_rng(2).random((12, 4)), index=idx, columns=cols + ) + + subidx = MultiIndex.from_arrays( + [["A", "A"], date_range("2015-01-01", "2015-02-01", freq="MS")] + ) + subcols = MultiIndex.from_arrays( + [["foo", "foo"], date_range("2016-01-01", "2016-02-01", freq="MS")] + ) + + vals = DataFrame( + np.random.default_rng(2).random((2, 2)), index=subidx, columns=subcols + ) + self.check( + target=df, + indexers=(subidx, subcols), + value=vals, + compare_fn=tm.assert_frame_equal, + ) + # set all columns + vals = DataFrame( + np.random.default_rng(2).random((2, 4)), index=subidx, columns=cols + ) + self.check( + target=df, + indexers=(subidx, slice(None, None, None)), + value=vals, + compare_fn=tm.assert_frame_equal, + ) + # identity + copy = df.copy() + self.check( + target=df, + indexers=(df.index, df.columns), + value=df, + compare_fn=tm.assert_frame_equal, + expected=copy, + ) + + # TODO(ArrayManager) df.loc["bar"] *= 2 doesn't raise an error but results in + # all NaNs -> doesn't work in the "split" path (also for BlockManager actually) + @td.skip_array_manager_not_yet_implemented + def test_multiindex_setitem(self): + # GH 3738 + # setting with a multi-index right hand side + arrays = [ + np.array(["bar", "bar", "baz", "qux", "qux", "bar"]), + np.array(["one", "two", "one", "one", "two", "one"]), + np.arange(0, 6, 1), + ] + + df_orig = DataFrame( + np.random.default_rng(2).standard_normal((6, 3)), + index=arrays, + columns=["A", "B", "C"], + ).sort_index() + + expected = df_orig.loc[["bar"]] * 2 + df = df_orig.copy() + df.loc[["bar"]] *= 2 + tm.assert_frame_equal(df.loc[["bar"]], expected) + + # raise because these have differing levels + msg = "cannot align on a multi-index with out specifying the join levels" + with pytest.raises(TypeError, match=msg): + df.loc["bar"] *= 2 + + def test_multiindex_setitem2(self): + # from SO + # https://stackoverflow.com/questions/24572040/pandas-access-the-level-of-multiindex-for-inplace-operation + df_orig = DataFrame.from_dict( + { + "price": { + ("DE", "Coal", "Stock"): 2, + ("DE", "Gas", "Stock"): 4, + ("DE", "Elec", "Demand"): 1, + ("FR", "Gas", "Stock"): 5, + ("FR", "Solar", "SupIm"): 0, + ("FR", "Wind", "SupIm"): 0, + } + } + ) + df_orig.index = MultiIndex.from_tuples( + df_orig.index, names=["Sit", "Com", "Type"] + ) + + expected = df_orig.copy() + expected.iloc[[0, 1, 3]] *= 2 + + idx = pd.IndexSlice + df = df_orig.copy() + df.loc[idx[:, :, "Stock"], :] *= 2 + tm.assert_frame_equal(df, expected) + + df = df_orig.copy() + df.loc[idx[:, :, "Stock"], "price"] *= 2 + tm.assert_frame_equal(df, expected) + + def test_multiindex_assignment(self): + # GH3777 part 2 + + # mixed dtype + df = DataFrame( + np.random.default_rng(2).integers(5, 10, size=9).reshape(3, 3), + columns=list("abc"), + index=[[4, 4, 8], [8, 10, 12]], + ) + df["d"] = np.nan + arr = np.array([0.0, 1.0]) + + df.loc[4, "d"] = arr + tm.assert_series_equal(df.loc[4, "d"], Series(arr, index=[8, 10], name="d")) + + def test_multiindex_assignment_single_dtype( + self, using_copy_on_write, warn_copy_on_write + ): + # GH3777 part 2b + # single dtype + arr = np.array([0.0, 1.0]) + + df = DataFrame( + np.random.default_rng(2).integers(5, 10, size=9).reshape(3, 3), + columns=list("abc"), + index=[[4, 4, 8], [8, 10, 12]], + dtype=np.int64, + ) + view = df["c"].iloc[:2].values + + # arr can be losslessly cast to int, so this setitem is inplace + # INFO(CoW-warn) this does not warn because we directly took .values + # above, so no reference to a pandas object is alive for `view` + df.loc[4, "c"] = arr + exp = Series(arr, index=[8, 10], name="c", dtype="int64") + result = df.loc[4, "c"] + tm.assert_series_equal(result, exp) + + # extra check for inplace-ness + if not using_copy_on_write: + tm.assert_numpy_array_equal(view, exp.values) + + # arr + 0.5 cannot be cast losslessly to int, so we upcast + with tm.assert_produces_warning( + FutureWarning, match="item of incompatible dtype" + ): + df.loc[4, "c"] = arr + 0.5 + result = df.loc[4, "c"] + exp = exp + 0.5 + tm.assert_series_equal(result, exp) + + # scalar ok + with tm.assert_cow_warning(warn_copy_on_write): + df.loc[4, "c"] = 10 + exp = Series(10, index=[8, 10], name="c", dtype="float64") + tm.assert_series_equal(df.loc[4, "c"], exp) + + # invalid assignments + msg = "Must have equal len keys and value when setting with an iterable" + with pytest.raises(ValueError, match=msg): + df.loc[4, "c"] = [0, 1, 2, 3] + + with pytest.raises(ValueError, match=msg): + df.loc[4, "c"] = [0] + + # But with a length-1 listlike column indexer this behaves like + # `df.loc[4, "c"] = 0 + with tm.assert_cow_warning(warn_copy_on_write): + df.loc[4, ["c"]] = [0] + assert (df.loc[4, "c"] == 0).all() + + def test_groupby_example(self): + # groupby example + NUM_ROWS = 100 + NUM_COLS = 10 + col_names = ["A" + num for num in map(str, np.arange(NUM_COLS).tolist())] + index_cols = col_names[:5] + + df = DataFrame( + np.random.default_rng(2).integers(5, size=(NUM_ROWS, NUM_COLS)), + dtype=np.int64, + columns=col_names, + ) + df = df.set_index(index_cols).sort_index() + grp = df.groupby(level=index_cols[:4]) + df["new_col"] = np.nan + + # we are actually operating on a copy here + # but in this case, that's ok + for name, df2 in grp: + new_vals = np.arange(df2.shape[0]) + df.loc[name, "new_col"] = new_vals + + def test_series_setitem( + self, multiindex_year_month_day_dataframe_random_data, warn_copy_on_write + ): + ymd = multiindex_year_month_day_dataframe_random_data + s = ymd["A"] + + with tm.assert_cow_warning(warn_copy_on_write): + s[2000, 3] = np.nan + assert isna(s.values[42:65]).all() + assert notna(s.values[:42]).all() + assert notna(s.values[65:]).all() + + with tm.assert_cow_warning(warn_copy_on_write): + s[2000, 3, 10] = np.nan + assert isna(s.iloc[49]) + + with pytest.raises(KeyError, match="49"): + # GH#33355 dont fall-back to positional when leading level is int + s[49] + + def test_frame_getitem_setitem_boolean(self, multiindex_dataframe_random_data): + frame = multiindex_dataframe_random_data + df = frame.T.copy() + values = df.values.copy() + + result = df[df > 0] + expected = df.where(df > 0) + tm.assert_frame_equal(result, expected) + + df[df > 0] = 5 + values[values > 0] = 5 + tm.assert_almost_equal(df.values, values) + + df[df == 5] = 0 + values[values == 5] = 0 + tm.assert_almost_equal(df.values, values) + + # a df that needs alignment first + df[df[:-1] < 0] = 2 + np.putmask(values[:-1], values[:-1] < 0, 2) + tm.assert_almost_equal(df.values, values) + + with pytest.raises(TypeError, match="boolean values only"): + df[df * 0] = 2 + + def test_frame_getitem_setitem_multislice(self): + levels = [["t1", "t2"], ["a", "b", "c"]] + codes = [[0, 0, 0, 1, 1], [0, 1, 2, 0, 1]] + midx = MultiIndex(codes=codes, levels=levels, names=[None, "id"]) + df = DataFrame({"value": [1, 2, 3, 7, 8]}, index=midx) + + result = df.loc[:, "value"] + tm.assert_series_equal(df["value"], result) + + result = df.loc[df.index[1:3], "value"] + tm.assert_series_equal(df["value"][1:3], result) + + result = df.loc[:, :] + tm.assert_frame_equal(df, result) + + result = df + df.loc[:, "value"] = 10 + result["value"] = 10 + tm.assert_frame_equal(df, result) + + df.loc[:, :] = 10 + tm.assert_frame_equal(df, result) + + def test_frame_setitem_multi_column(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 4)), + columns=[["a", "a", "b", "b"], [0, 1, 0, 1]], + ) + + cp = df.copy() + cp["a"] = cp["b"] + tm.assert_frame_equal(cp["a"], cp["b"]) + + # set with ndarray + cp = df.copy() + cp["a"] = cp["b"].values + tm.assert_frame_equal(cp["a"], cp["b"]) + + def test_frame_setitem_multi_column2(self): + # --------------------------------------- + # GH#1803 + columns = MultiIndex.from_tuples([("A", "1"), ("A", "2"), ("B", "1")]) + df = DataFrame(index=[1, 3, 5], columns=columns) + + # Works, but adds a column instead of updating the two existing ones + df["A"] = 0.0 # Doesn't work + assert (df["A"].values == 0).all() + + # it broadcasts + df["B", "1"] = [1, 2, 3] + df["A"] = df["B", "1"] + + sliced_a1 = df["A", "1"] + sliced_a2 = df["A", "2"] + sliced_b1 = df["B", "1"] + tm.assert_series_equal(sliced_a1, sliced_b1, check_names=False) + tm.assert_series_equal(sliced_a2, sliced_b1, check_names=False) + assert sliced_a1.name == ("A", "1") + assert sliced_a2.name == ("A", "2") + assert sliced_b1.name == ("B", "1") + + def test_loc_getitem_tuple_plus_columns( + self, multiindex_year_month_day_dataframe_random_data + ): + # GH #1013 + ymd = multiindex_year_month_day_dataframe_random_data + df = ymd[:5] + + result = df.loc[(2000, 1, 6), ["A", "B", "C"]] + expected = df.loc[2000, 1, 6][["A", "B", "C"]] + tm.assert_series_equal(result, expected) + + @pytest.mark.filterwarnings("ignore:Setting a value on a view:FutureWarning") + def test_loc_getitem_setitem_slice_integers(self, frame_or_series): + index = MultiIndex( + levels=[[0, 1, 2], [0, 2]], codes=[[0, 0, 1, 1, 2, 2], [0, 1, 0, 1, 0, 1]] + ) + + obj = DataFrame( + np.random.default_rng(2).standard_normal((len(index), 4)), + index=index, + columns=["a", "b", "c", "d"], + ) + obj = tm.get_obj(obj, frame_or_series) + + res = obj.loc[1:2] + exp = obj.reindex(obj.index[2:]) + tm.assert_equal(res, exp) + + obj.loc[1:2] = 7 + assert (obj.loc[1:2] == 7).values.all() + + def test_setitem_change_dtype(self, multiindex_dataframe_random_data): + frame = multiindex_dataframe_random_data + dft = frame.T + s = dft["foo", "two"] + dft["foo", "two"] = s > s.median() + tm.assert_series_equal(dft["foo", "two"], s > s.median()) + # assert isinstance(dft._data.blocks[1].items, MultiIndex) + + reindexed = dft.reindex(columns=[("foo", "two")]) + tm.assert_series_equal(reindexed["foo", "two"], s > s.median()) + + def test_set_column_scalar_with_loc( + self, multiindex_dataframe_random_data, using_copy_on_write, warn_copy_on_write + ): + frame = multiindex_dataframe_random_data + subset = frame.index[[1, 4, 5]] + + frame.loc[subset] = 99 + assert (frame.loc[subset].values == 99).all() + + frame_original = frame.copy() + col = frame["B"] + with tm.assert_cow_warning(warn_copy_on_write): + col[subset] = 97 + if using_copy_on_write: + # chained setitem doesn't work with CoW + tm.assert_frame_equal(frame, frame_original) + else: + assert (frame.loc[subset, "B"] == 97).all() + + def test_nonunique_assignment_1750(self): + df = DataFrame( + [[1, 1, "x", "X"], [1, 1, "y", "Y"], [1, 2, "z", "Z"]], columns=list("ABCD") + ) + + df = df.set_index(["A", "B"]) + mi = MultiIndex.from_tuples([(1, 1)]) + + df.loc[mi, "C"] = "_" + + assert (df.xs((1, 1))["C"] == "_").all() + + def test_astype_assignment_with_dups(self): + # GH 4686 + # assignment with dups that has a dtype change + cols = MultiIndex.from_tuples([("A", "1"), ("B", "1"), ("A", "2")]) + df = DataFrame(np.arange(3).reshape((1, 3)), columns=cols, dtype=object) + index = df.index.copy() + + df["A"] = df["A"].astype(np.float64) + tm.assert_index_equal(df.index, index) + + def test_setitem_nonmonotonic(self): + # https://github.com/pandas-dev/pandas/issues/31449 + index = MultiIndex.from_tuples( + [("a", "c"), ("b", "x"), ("a", "d")], names=["l1", "l2"] + ) + df = DataFrame(data=[0, 1, 2], index=index, columns=["e"]) + df.loc["a", "e"] = np.arange(99, 101, dtype="int64") + expected = DataFrame({"e": [99, 1, 100]}, index=index) + tm.assert_frame_equal(df, expected) + + +class TestSetitemWithExpansionMultiIndex: + def test_setitem_new_column_mixed_depth(self): + arrays = [ + ["a", "top", "top", "routine1", "routine1", "routine2"], + ["", "OD", "OD", "result1", "result2", "result1"], + ["", "wx", "wy", "", "", ""], + ] + + tuples = sorted(zip(*arrays)) + index = MultiIndex.from_tuples(tuples) + df = DataFrame(np.random.default_rng(2).standard_normal((4, 6)), columns=index) + + result = df.copy() + expected = df.copy() + result["b"] = [1, 2, 3, 4] + expected["b", "", ""] = [1, 2, 3, 4] + tm.assert_frame_equal(result, expected) + + def test_setitem_new_column_all_na(self): + # GH#1534 + mix = MultiIndex.from_tuples([("1a", "2a"), ("1a", "2b"), ("1a", "2c")]) + df = DataFrame([[1, 2], [3, 4], [5, 6]], index=mix) + s = Series({(1, 1): 1, (1, 2): 2}) + df["new"] = s + assert df["new"].isna().all() + + def test_setitem_enlargement_keep_index_names(self): + # GH#53053 + mi = MultiIndex.from_tuples([(1, 2, 3)], names=["i1", "i2", "i3"]) + df = DataFrame(data=[[10, 20, 30]], index=mi, columns=["A", "B", "C"]) + df.loc[(0, 0, 0)] = df.loc[(1, 2, 3)] + mi_expected = MultiIndex.from_tuples( + [(1, 2, 3), (0, 0, 0)], names=["i1", "i2", "i3"] + ) + expected = DataFrame( + data=[[10, 20, 30], [10, 20, 30]], + index=mi_expected, + columns=["A", "B", "C"], + ) + tm.assert_frame_equal(df, expected) + + +@td.skip_array_manager_invalid_test # df["foo"] select multiple columns -> .values +# is not a view +def test_frame_setitem_view_direct( + multiindex_dataframe_random_data, using_copy_on_write +): + # this works because we are modifying the underlying array + # really a no-no + df = multiindex_dataframe_random_data.T + if using_copy_on_write: + with pytest.raises(ValueError, match="read-only"): + df["foo"].values[:] = 0 + assert (df["foo"].values != 0).all() + else: + df["foo"].values[:] = 0 + assert (df["foo"].values == 0).all() + + +def test_frame_setitem_copy_raises( + multiindex_dataframe_random_data, using_copy_on_write, warn_copy_on_write +): + # will raise/warn as its chained assignment + df = multiindex_dataframe_random_data.T + if using_copy_on_write or warn_copy_on_write: + with tm.raises_chained_assignment_error(): + df["foo"]["one"] = 2 + else: + msg = "A value is trying to be set on a copy of a slice from a DataFrame" + with pytest.raises(SettingWithCopyError, match=msg): + with tm.raises_chained_assignment_error(): + df["foo"]["one"] = 2 + + +def test_frame_setitem_copy_no_write( + multiindex_dataframe_random_data, using_copy_on_write, warn_copy_on_write +): + frame = multiindex_dataframe_random_data.T + expected = frame + df = frame.copy() + if using_copy_on_write or warn_copy_on_write: + with tm.raises_chained_assignment_error(): + df["foo"]["one"] = 2 + else: + msg = "A value is trying to be set on a copy of a slice from a DataFrame" + with pytest.raises(SettingWithCopyError, match=msg): + with tm.raises_chained_assignment_error(): + df["foo"]["one"] = 2 + + result = df + tm.assert_frame_equal(result, expected) + + +def test_frame_setitem_partial_multiindex(): + # GH 54875 + df = DataFrame( + { + "a": [1, 2, 3], + "b": [3, 4, 5], + "c": 6, + "d": 7, + } + ).set_index(["a", "b", "c"]) + ser = Series(8, index=df.index.droplevel("c")) + result = df.copy() + result["d"] = ser + expected = df.copy() + expected["d"] = 8 + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_slice.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_slice.py new file mode 100644 index 0000000000000000000000000000000000000000..cef3dca054758eb8c4926455c449d73d63c0dc63 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_slice.py @@ -0,0 +1,796 @@ +from datetime import ( + datetime, + timedelta, +) + +import numpy as np +import pytest + +from pandas.errors import UnsortedIndexError + +import pandas as pd +from pandas import ( + DataFrame, + Index, + MultiIndex, + Series, + Timestamp, +) +import pandas._testing as tm +from pandas.tests.indexing.common import _mklbl + + +class TestMultiIndexSlicers: + def test_per_axis_per_level_getitem(self): + # GH6134 + # example test case + ix = MultiIndex.from_product( + [_mklbl("A", 5), _mklbl("B", 7), _mklbl("C", 4), _mklbl("D", 2)] + ) + df = DataFrame(np.arange(len(ix.to_numpy())), index=ix) + + result = df.loc[(slice("A1", "A3"), slice(None), ["C1", "C3"]), :] + expected = df.loc[ + [ + ( + a, + b, + c, + d, + ) + for a, b, c, d in df.index.values + if a in ("A1", "A2", "A3") and c in ("C1", "C3") + ] + ] + tm.assert_frame_equal(result, expected) + + expected = df.loc[ + [ + ( + a, + b, + c, + d, + ) + for a, b, c, d in df.index.values + if a in ("A1", "A2", "A3") and c in ("C1", "C2", "C3") + ] + ] + result = df.loc[(slice("A1", "A3"), slice(None), slice("C1", "C3")), :] + tm.assert_frame_equal(result, expected) + + # test multi-index slicing with per axis and per index controls + index = MultiIndex.from_tuples( + [("A", 1), ("A", 2), ("A", 3), ("B", 1)], names=["one", "two"] + ) + columns = MultiIndex.from_tuples( + [("a", "foo"), ("a", "bar"), ("b", "foo"), ("b", "bah")], + names=["lvl0", "lvl1"], + ) + + df = DataFrame( + np.arange(16, dtype="int64").reshape(4, 4), index=index, columns=columns + ) + df = df.sort_index(axis=0).sort_index(axis=1) + + # identity + result = df.loc[(slice(None), slice(None)), :] + tm.assert_frame_equal(result, df) + result = df.loc[(slice(None), slice(None)), (slice(None), slice(None))] + tm.assert_frame_equal(result, df) + result = df.loc[:, (slice(None), slice(None))] + tm.assert_frame_equal(result, df) + + # index + result = df.loc[(slice(None), [1]), :] + expected = df.iloc[[0, 3]] + tm.assert_frame_equal(result, expected) + + result = df.loc[(slice(None), 1), :] + expected = df.iloc[[0, 3]] + tm.assert_frame_equal(result, expected) + + # columns + result = df.loc[:, (slice(None), ["foo"])] + expected = df.iloc[:, [1, 3]] + tm.assert_frame_equal(result, expected) + + # both + result = df.loc[(slice(None), 1), (slice(None), ["foo"])] + expected = df.iloc[[0, 3], [1, 3]] + tm.assert_frame_equal(result, expected) + + result = df.loc["A", "a"] + expected = DataFrame( + {"bar": [1, 5, 9], "foo": [0, 4, 8]}, + index=Index([1, 2, 3], name="two"), + columns=Index(["bar", "foo"], name="lvl1"), + ) + tm.assert_frame_equal(result, expected) + + result = df.loc[(slice(None), [1, 2]), :] + expected = df.iloc[[0, 1, 3]] + tm.assert_frame_equal(result, expected) + + # multi-level series + s = Series(np.arange(len(ix.to_numpy())), index=ix) + result = s.loc["A1":"A3", :, ["C1", "C3"]] + expected = s.loc[ + [ + ( + a, + b, + c, + d, + ) + for a, b, c, d in s.index.values + if a in ("A1", "A2", "A3") and c in ("C1", "C3") + ] + ] + tm.assert_series_equal(result, expected) + + # boolean indexers + result = df.loc[(slice(None), df.loc[:, ("a", "bar")] > 5), :] + expected = df.iloc[[2, 3]] + tm.assert_frame_equal(result, expected) + + msg = ( + "cannot index with a boolean indexer " + "that is not the same length as the index" + ) + with pytest.raises(ValueError, match=msg): + df.loc[(slice(None), np.array([True, False])), :] + + with pytest.raises(KeyError, match=r"\[1\] not in index"): + # slice(None) is on the index, [1] is on the columns, but 1 is + # not in the columns, so we raise + # This used to treat [1] as positional GH#16396 + df.loc[slice(None), [1]] + + # not lexsorted + assert df.index._lexsort_depth == 2 + df = df.sort_index(level=1, axis=0) + assert df.index._lexsort_depth == 0 + + msg = ( + "MultiIndex slicing requires the index to be " + r"lexsorted: slicing on levels \[1\], lexsort depth 0" + ) + with pytest.raises(UnsortedIndexError, match=msg): + df.loc[(slice(None), slice("bar")), :] + + # GH 16734: not sorted, but no real slicing + result = df.loc[(slice(None), df.loc[:, ("a", "bar")] > 5), :] + tm.assert_frame_equal(result, df.iloc[[1, 3], :]) + + def test_multiindex_slicers_non_unique(self): + # GH 7106 + # non-unique mi index support + df = ( + DataFrame( + { + "A": ["foo", "foo", "foo", "foo"], + "B": ["a", "a", "a", "a"], + "C": [1, 2, 1, 3], + "D": [1, 2, 3, 4], + } + ) + .set_index(["A", "B", "C"]) + .sort_index() + ) + assert not df.index.is_unique + expected = ( + DataFrame({"A": ["foo", "foo"], "B": ["a", "a"], "C": [1, 1], "D": [1, 3]}) + .set_index(["A", "B", "C"]) + .sort_index() + ) + result = df.loc[(slice(None), slice(None), 1), :] + tm.assert_frame_equal(result, expected) + + # this is equivalent of an xs expression + result = df.xs(1, level=2, drop_level=False) + tm.assert_frame_equal(result, expected) + + df = ( + DataFrame( + { + "A": ["foo", "foo", "foo", "foo"], + "B": ["a", "a", "a", "a"], + "C": [1, 2, 1, 2], + "D": [1, 2, 3, 4], + } + ) + .set_index(["A", "B", "C"]) + .sort_index() + ) + assert not df.index.is_unique + expected = ( + DataFrame({"A": ["foo", "foo"], "B": ["a", "a"], "C": [1, 1], "D": [1, 3]}) + .set_index(["A", "B", "C"]) + .sort_index() + ) + result = df.loc[(slice(None), slice(None), 1), :] + assert not result.index.is_unique + tm.assert_frame_equal(result, expected) + + # GH12896 + # numpy-implementation dependent bug + ints = [ + 1, + 2, + 3, + 4, + 5, + 6, + 7, + 8, + 9, + 10, + 11, + 12, + 12, + 13, + 14, + 14, + 16, + 17, + 18, + 19, + 200000, + 200000, + ] + n = len(ints) + idx = MultiIndex.from_arrays([["a"] * n, ints]) + result = Series([1] * n, index=idx) + result = result.sort_index() + result = result.loc[(slice(None), slice(100000))] + expected = Series([1] * (n - 2), index=idx[:-2]).sort_index() + tm.assert_series_equal(result, expected) + + def test_multiindex_slicers_datetimelike(self): + # GH 7429 + # buggy/inconsistent behavior when slicing with datetime-like + dates = [datetime(2012, 1, 1, 12, 12, 12) + timedelta(days=i) for i in range(6)] + freq = [1, 2] + index = MultiIndex.from_product([dates, freq], names=["date", "frequency"]) + + df = DataFrame( + np.arange(6 * 2 * 4, dtype="int64").reshape(-1, 4), + index=index, + columns=list("ABCD"), + ) + + # multi-axis slicing + idx = pd.IndexSlice + expected = df.iloc[[0, 2, 4], [0, 1]] + result = df.loc[ + ( + slice( + Timestamp("2012-01-01 12:12:12"), Timestamp("2012-01-03 12:12:12") + ), + slice(1, 1), + ), + slice("A", "B"), + ] + tm.assert_frame_equal(result, expected) + + result = df.loc[ + ( + idx[ + Timestamp("2012-01-01 12:12:12") : Timestamp("2012-01-03 12:12:12") + ], + idx[1:1], + ), + slice("A", "B"), + ] + tm.assert_frame_equal(result, expected) + + result = df.loc[ + ( + slice( + Timestamp("2012-01-01 12:12:12"), Timestamp("2012-01-03 12:12:12") + ), + 1, + ), + slice("A", "B"), + ] + tm.assert_frame_equal(result, expected) + + # with strings + result = df.loc[ + (slice("2012-01-01 12:12:12", "2012-01-03 12:12:12"), slice(1, 1)), + slice("A", "B"), + ] + tm.assert_frame_equal(result, expected) + + result = df.loc[ + (idx["2012-01-01 12:12:12":"2012-01-03 12:12:12"], 1), idx["A", "B"] + ] + tm.assert_frame_equal(result, expected) + + def test_multiindex_slicers_edges(self): + # GH 8132 + # various edge cases + df = DataFrame( + { + "A": ["A0"] * 5 + ["A1"] * 5 + ["A2"] * 5, + "B": ["B0", "B0", "B1", "B1", "B2"] * 3, + "DATE": [ + "2013-06-11", + "2013-07-02", + "2013-07-09", + "2013-07-30", + "2013-08-06", + "2013-06-11", + "2013-07-02", + "2013-07-09", + "2013-07-30", + "2013-08-06", + "2013-09-03", + "2013-10-01", + "2013-07-09", + "2013-08-06", + "2013-09-03", + ], + "VALUES": [22, 35, 14, 9, 4, 40, 18, 4, 2, 5, 1, 2, 3, 4, 2], + } + ) + + df["DATE"] = pd.to_datetime(df["DATE"]) + df1 = df.set_index(["A", "B", "DATE"]) + df1 = df1.sort_index() + + # A1 - Get all values under "A0" and "A1" + result = df1.loc[(slice("A1")), :] + expected = df1.iloc[0:10] + tm.assert_frame_equal(result, expected) + + # A2 - Get all values from the start to "A2" + result = df1.loc[(slice("A2")), :] + expected = df1 + tm.assert_frame_equal(result, expected) + + # A3 - Get all values under "B1" or "B2" + result = df1.loc[(slice(None), slice("B1", "B2")), :] + expected = df1.iloc[[2, 3, 4, 7, 8, 9, 12, 13, 14]] + tm.assert_frame_equal(result, expected) + + # A4 - Get all values between 2013-07-02 and 2013-07-09 + result = df1.loc[(slice(None), slice(None), slice("20130702", "20130709")), :] + expected = df1.iloc[[1, 2, 6, 7, 12]] + tm.assert_frame_equal(result, expected) + + # B1 - Get all values in B0 that are also under A0, A1 and A2 + result = df1.loc[(slice("A2"), slice("B0")), :] + expected = df1.iloc[[0, 1, 5, 6, 10, 11]] + tm.assert_frame_equal(result, expected) + + # B2 - Get all values in B0, B1 and B2 (similar to what #2 is doing for + # the As) + result = df1.loc[(slice(None), slice("B2")), :] + expected = df1 + tm.assert_frame_equal(result, expected) + + # B3 - Get all values from B1 to B2 and up to 2013-08-06 + result = df1.loc[(slice(None), slice("B1", "B2"), slice("2013-08-06")), :] + expected = df1.iloc[[2, 3, 4, 7, 8, 9, 12, 13]] + tm.assert_frame_equal(result, expected) + + # B4 - Same as A4 but the start of the date slice is not a key. + # shows indexing on a partial selection slice + result = df1.loc[(slice(None), slice(None), slice("20130701", "20130709")), :] + expected = df1.iloc[[1, 2, 6, 7, 12]] + tm.assert_frame_equal(result, expected) + + def test_per_axis_per_level_doc_examples(self): + # test index maker + idx = pd.IndexSlice + + # from indexing.rst / advanced + index = MultiIndex.from_product( + [_mklbl("A", 4), _mklbl("B", 2), _mklbl("C", 4), _mklbl("D", 2)] + ) + columns = MultiIndex.from_tuples( + [("a", "foo"), ("a", "bar"), ("b", "foo"), ("b", "bah")], + names=["lvl0", "lvl1"], + ) + df = DataFrame( + np.arange(len(index) * len(columns), dtype="int64").reshape( + (len(index), len(columns)) + ), + index=index, + columns=columns, + ) + result = df.loc[(slice("A1", "A3"), slice(None), ["C1", "C3"]), :] + expected = df.loc[ + [ + ( + a, + b, + c, + d, + ) + for a, b, c, d in df.index.values + if a in ("A1", "A2", "A3") and c in ("C1", "C3") + ] + ] + tm.assert_frame_equal(result, expected) + result = df.loc[idx["A1":"A3", :, ["C1", "C3"]], :] + tm.assert_frame_equal(result, expected) + + result = df.loc[(slice(None), slice(None), ["C1", "C3"]), :] + expected = df.loc[ + [ + ( + a, + b, + c, + d, + ) + for a, b, c, d in df.index.values + if c in ("C1", "C3") + ] + ] + tm.assert_frame_equal(result, expected) + result = df.loc[idx[:, :, ["C1", "C3"]], :] + tm.assert_frame_equal(result, expected) + + # not sorted + msg = ( + "MultiIndex slicing requires the index to be lexsorted: " + r"slicing on levels \[1\], lexsort depth 1" + ) + with pytest.raises(UnsortedIndexError, match=msg): + df.loc["A1", ("a", slice("foo"))] + + # GH 16734: not sorted, but no real slicing + tm.assert_frame_equal( + df.loc["A1", (slice(None), "foo")], df.loc["A1"].iloc[:, [0, 2]] + ) + + df = df.sort_index(axis=1) + + # slicing + df.loc["A1", (slice(None), "foo")] + df.loc[(slice(None), slice(None), ["C1", "C3"]), (slice(None), "foo")] + + # setitem + df.loc(axis=0)[:, :, ["C1", "C3"]] = -10 + + def test_loc_axis_arguments(self): + index = MultiIndex.from_product( + [_mklbl("A", 4), _mklbl("B", 2), _mklbl("C", 4), _mklbl("D", 2)] + ) + columns = MultiIndex.from_tuples( + [("a", "foo"), ("a", "bar"), ("b", "foo"), ("b", "bah")], + names=["lvl0", "lvl1"], + ) + df = ( + DataFrame( + np.arange(len(index) * len(columns), dtype="int64").reshape( + (len(index), len(columns)) + ), + index=index, + columns=columns, + ) + .sort_index() + .sort_index(axis=1) + ) + + # axis 0 + result = df.loc(axis=0)["A1":"A3", :, ["C1", "C3"]] + expected = df.loc[ + [ + ( + a, + b, + c, + d, + ) + for a, b, c, d in df.index.values + if a in ("A1", "A2", "A3") and c in ("C1", "C3") + ] + ] + tm.assert_frame_equal(result, expected) + + result = df.loc(axis="index")[:, :, ["C1", "C3"]] + expected = df.loc[ + [ + ( + a, + b, + c, + d, + ) + for a, b, c, d in df.index.values + if c in ("C1", "C3") + ] + ] + tm.assert_frame_equal(result, expected) + + # axis 1 + result = df.loc(axis=1)[:, "foo"] + expected = df.loc[:, (slice(None), "foo")] + tm.assert_frame_equal(result, expected) + + result = df.loc(axis="columns")[:, "foo"] + expected = df.loc[:, (slice(None), "foo")] + tm.assert_frame_equal(result, expected) + + # invalid axis + for i in [-1, 2, "foo"]: + msg = f"No axis named {i} for object type DataFrame" + with pytest.raises(ValueError, match=msg): + df.loc(axis=i)[:, :, ["C1", "C3"]] + + def test_loc_axis_single_level_multi_col_indexing_multiindex_col_df(self): + # GH29519 + df = DataFrame( + np.arange(27).reshape(3, 9), + columns=MultiIndex.from_product([["a1", "a2", "a3"], ["b1", "b2", "b3"]]), + ) + result = df.loc(axis=1)["a1":"a2"] + expected = df.iloc[:, :-3] + + tm.assert_frame_equal(result, expected) + + def test_loc_axis_single_level_single_col_indexing_multiindex_col_df(self): + # GH29519 + df = DataFrame( + np.arange(27).reshape(3, 9), + columns=MultiIndex.from_product([["a1", "a2", "a3"], ["b1", "b2", "b3"]]), + ) + result = df.loc(axis=1)["a1"] + expected = df.iloc[:, :3] + expected.columns = ["b1", "b2", "b3"] + + tm.assert_frame_equal(result, expected) + + def test_loc_ax_single_level_indexer_simple_df(self): + # GH29519 + # test single level indexing on single index column data frame + df = DataFrame(np.arange(9).reshape(3, 3), columns=["a", "b", "c"]) + result = df.loc(axis=1)["a"] + expected = Series(np.array([0, 3, 6]), name="a") + tm.assert_series_equal(result, expected) + + def test_per_axis_per_level_setitem(self): + # test index maker + idx = pd.IndexSlice + + # test multi-index slicing with per axis and per index controls + index = MultiIndex.from_tuples( + [("A", 1), ("A", 2), ("A", 3), ("B", 1)], names=["one", "two"] + ) + columns = MultiIndex.from_tuples( + [("a", "foo"), ("a", "bar"), ("b", "foo"), ("b", "bah")], + names=["lvl0", "lvl1"], + ) + + df_orig = DataFrame( + np.arange(16, dtype="int64").reshape(4, 4), index=index, columns=columns + ) + df_orig = df_orig.sort_index(axis=0).sort_index(axis=1) + + # identity + df = df_orig.copy() + df.loc[(slice(None), slice(None)), :] = 100 + expected = df_orig.copy() + expected.iloc[:, :] = 100 + tm.assert_frame_equal(df, expected) + + df = df_orig.copy() + df.loc(axis=0)[:, :] = 100 + expected = df_orig.copy() + expected.iloc[:, :] = 100 + tm.assert_frame_equal(df, expected) + + df = df_orig.copy() + df.loc[(slice(None), slice(None)), (slice(None), slice(None))] = 100 + expected = df_orig.copy() + expected.iloc[:, :] = 100 + tm.assert_frame_equal(df, expected) + + df = df_orig.copy() + df.loc[:, (slice(None), slice(None))] = 100 + expected = df_orig.copy() + expected.iloc[:, :] = 100 + tm.assert_frame_equal(df, expected) + + # index + df = df_orig.copy() + df.loc[(slice(None), [1]), :] = 100 + expected = df_orig.copy() + expected.iloc[[0, 3]] = 100 + tm.assert_frame_equal(df, expected) + + df = df_orig.copy() + df.loc[(slice(None), 1), :] = 100 + expected = df_orig.copy() + expected.iloc[[0, 3]] = 100 + tm.assert_frame_equal(df, expected) + + df = df_orig.copy() + df.loc(axis=0)[:, 1] = 100 + expected = df_orig.copy() + expected.iloc[[0, 3]] = 100 + tm.assert_frame_equal(df, expected) + + # columns + df = df_orig.copy() + df.loc[:, (slice(None), ["foo"])] = 100 + expected = df_orig.copy() + expected.iloc[:, [1, 3]] = 100 + tm.assert_frame_equal(df, expected) + + # both + df = df_orig.copy() + df.loc[(slice(None), 1), (slice(None), ["foo"])] = 100 + expected = df_orig.copy() + expected.iloc[[0, 3], [1, 3]] = 100 + tm.assert_frame_equal(df, expected) + + df = df_orig.copy() + df.loc[idx[:, 1], idx[:, ["foo"]]] = 100 + expected = df_orig.copy() + expected.iloc[[0, 3], [1, 3]] = 100 + tm.assert_frame_equal(df, expected) + + df = df_orig.copy() + df.loc["A", "a"] = 100 + expected = df_orig.copy() + expected.iloc[0:3, 0:2] = 100 + tm.assert_frame_equal(df, expected) + + # setting with a list-like + df = df_orig.copy() + df.loc[(slice(None), 1), (slice(None), ["foo"])] = np.array( + [[100, 100], [100, 100]], dtype="int64" + ) + expected = df_orig.copy() + expected.iloc[[0, 3], [1, 3]] = 100 + tm.assert_frame_equal(df, expected) + + # not enough values + df = df_orig.copy() + + msg = "setting an array element with a sequence." + with pytest.raises(ValueError, match=msg): + df.loc[(slice(None), 1), (slice(None), ["foo"])] = np.array( + [[100], [100, 100]], dtype="int64" + ) + + msg = "Must have equal len keys and value when setting with an iterable" + with pytest.raises(ValueError, match=msg): + df.loc[(slice(None), 1), (slice(None), ["foo"])] = np.array( + [100, 100, 100, 100], dtype="int64" + ) + + # with an alignable rhs + df = df_orig.copy() + df.loc[(slice(None), 1), (slice(None), ["foo"])] = ( + df.loc[(slice(None), 1), (slice(None), ["foo"])] * 5 + ) + expected = df_orig.copy() + expected.iloc[[0, 3], [1, 3]] = expected.iloc[[0, 3], [1, 3]] * 5 + tm.assert_frame_equal(df, expected) + + df = df_orig.copy() + df.loc[(slice(None), 1), (slice(None), ["foo"])] *= df.loc[ + (slice(None), 1), (slice(None), ["foo"]) + ] + expected = df_orig.copy() + expected.iloc[[0, 3], [1, 3]] *= expected.iloc[[0, 3], [1, 3]] + tm.assert_frame_equal(df, expected) + + rhs = df_orig.loc[(slice(None), 1), (slice(None), ["foo"])].copy() + rhs.loc[:, ("c", "bah")] = 10 + df = df_orig.copy() + df.loc[(slice(None), 1), (slice(None), ["foo"])] *= rhs + expected = df_orig.copy() + expected.iloc[[0, 3], [1, 3]] *= expected.iloc[[0, 3], [1, 3]] + tm.assert_frame_equal(df, expected) + + def test_multiindex_label_slicing_with_negative_step(self): + ser = Series( + np.arange(20), MultiIndex.from_product([list("abcde"), np.arange(4)]) + ) + SLC = pd.IndexSlice + + tm.assert_indexing_slices_equivalent(ser, SLC[::-1], SLC[::-1]) + + tm.assert_indexing_slices_equivalent(ser, SLC["d"::-1], SLC[15::-1]) + tm.assert_indexing_slices_equivalent(ser, SLC[("d",)::-1], SLC[15::-1]) + + tm.assert_indexing_slices_equivalent(ser, SLC[:"d":-1], SLC[:11:-1]) + tm.assert_indexing_slices_equivalent(ser, SLC[:("d",):-1], SLC[:11:-1]) + + tm.assert_indexing_slices_equivalent(ser, SLC["d":"b":-1], SLC[15:3:-1]) + tm.assert_indexing_slices_equivalent(ser, SLC[("d",):"b":-1], SLC[15:3:-1]) + tm.assert_indexing_slices_equivalent(ser, SLC["d":("b",):-1], SLC[15:3:-1]) + tm.assert_indexing_slices_equivalent(ser, SLC[("d",):("b",):-1], SLC[15:3:-1]) + tm.assert_indexing_slices_equivalent(ser, SLC["b":"d":-1], SLC[:0]) + + tm.assert_indexing_slices_equivalent(ser, SLC[("c", 2)::-1], SLC[10::-1]) + tm.assert_indexing_slices_equivalent(ser, SLC[:("c", 2):-1], SLC[:9:-1]) + tm.assert_indexing_slices_equivalent( + ser, SLC[("e", 0):("c", 2):-1], SLC[16:9:-1] + ) + + def test_multiindex_slice_first_level(self): + # GH 12697 + freq = ["a", "b", "c", "d"] + idx = MultiIndex.from_product([freq, range(500)]) + df = DataFrame(list(range(2000)), index=idx, columns=["Test"]) + df_slice = df.loc[pd.IndexSlice[:, 30:70], :] + result = df_slice.loc["a"] + expected = DataFrame(list(range(30, 71)), columns=["Test"], index=range(30, 71)) + tm.assert_frame_equal(result, expected) + result = df_slice.loc["d"] + expected = DataFrame( + list(range(1530, 1571)), columns=["Test"], index=range(30, 71) + ) + tm.assert_frame_equal(result, expected) + + def test_int_series_slicing(self, multiindex_year_month_day_dataframe_random_data): + ymd = multiindex_year_month_day_dataframe_random_data + s = ymd["A"] + result = s[5:] + expected = s.reindex(s.index[5:]) + tm.assert_series_equal(result, expected) + + s = ymd["A"].copy() + exp = ymd["A"].copy() + s[5:] = 0 + exp.iloc[5:] = 0 + tm.assert_numpy_array_equal(s.values, exp.values) + + result = ymd[5:] + expected = ymd.reindex(s.index[5:]) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "dtype, loc, iloc", + [ + # dtype = int, step = -1 + ("int", slice(None, None, -1), slice(None, None, -1)), + ("int", slice(3, None, -1), slice(3, None, -1)), + ("int", slice(None, 1, -1), slice(None, 0, -1)), + ("int", slice(3, 1, -1), slice(3, 0, -1)), + # dtype = int, step = -2 + ("int", slice(None, None, -2), slice(None, None, -2)), + ("int", slice(3, None, -2), slice(3, None, -2)), + ("int", slice(None, 1, -2), slice(None, 0, -2)), + ("int", slice(3, 1, -2), slice(3, 0, -2)), + # dtype = str, step = -1 + ("str", slice(None, None, -1), slice(None, None, -1)), + ("str", slice("d", None, -1), slice(3, None, -1)), + ("str", slice(None, "b", -1), slice(None, 0, -1)), + ("str", slice("d", "b", -1), slice(3, 0, -1)), + # dtype = str, step = -2 + ("str", slice(None, None, -2), slice(None, None, -2)), + ("str", slice("d", None, -2), slice(3, None, -2)), + ("str", slice(None, "b", -2), slice(None, 0, -2)), + ("str", slice("d", "b", -2), slice(3, 0, -2)), + ], + ) + def test_loc_slice_negative_stepsize(self, dtype, loc, iloc): + # GH#38071 + labels = { + "str": list("abcde"), + "int": range(5), + }[dtype] + + mi = MultiIndex.from_arrays([labels] * 2) + df = DataFrame(1.0, index=mi, columns=["A"]) + + SLC = pd.IndexSlice + + expected = df.iloc[iloc, :] + result_get_loc = df.loc[SLC[loc], :] + result_get_locs_level_0 = df.loc[SLC[loc, :], :] + result_get_locs_level_1 = df.loc[SLC[:, loc], :] + + tm.assert_frame_equal(result_get_loc, expected) + tm.assert_frame_equal(result_get_locs_level_0, expected) + tm.assert_frame_equal(result_get_locs_level_1, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_sorted.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_sorted.py new file mode 100644 index 0000000000000000000000000000000000000000..cf3fa5296c97c313292a0581cb776931c121fd52 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/multiindex/test_sorted.py @@ -0,0 +1,153 @@ +import numpy as np +import pytest + +from pandas import ( + NA, + DataFrame, + MultiIndex, + Series, + array, +) +import pandas._testing as tm + + +class TestMultiIndexSorted: + def test_getitem_multilevel_index_tuple_not_sorted(self): + index_columns = list("abc") + df = DataFrame( + [[0, 1, 0, "x"], [0, 0, 1, "y"]], columns=index_columns + ["data"] + ) + df = df.set_index(index_columns) + query_index = df.index[:1] + rs = df.loc[query_index, "data"] + + xp_idx = MultiIndex.from_tuples([(0, 1, 0)], names=["a", "b", "c"]) + xp = Series(["x"], index=xp_idx, name="data") + tm.assert_series_equal(rs, xp) + + def test_getitem_slice_not_sorted(self, multiindex_dataframe_random_data): + frame = multiindex_dataframe_random_data + df = frame.sort_index(level=1).T + + # buglet with int typechecking + result = df.iloc[:, : np.int32(3)] + expected = df.reindex(columns=df.columns[:3]) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("key", [None, lambda x: x]) + def test_frame_getitem_not_sorted2(self, key): + # 13431 + df = DataFrame( + { + "col1": ["b", "d", "b", "a"], + "col2": [3, 1, 1, 2], + "data": ["one", "two", "three", "four"], + } + ) + + df2 = df.set_index(["col1", "col2"]) + df2_original = df2.copy() + + df2.index = df2.index.set_levels(["b", "d", "a"], level="col1") + df2.index = df2.index.set_codes([0, 1, 0, 2], level="col1") + assert not df2.index.is_monotonic_increasing + + assert df2_original.index.equals(df2.index) + expected = df2.sort_index(key=key) + assert expected.index.is_monotonic_increasing + + result = df2.sort_index(level=0, key=key) + assert result.index.is_monotonic_increasing + tm.assert_frame_equal(result, expected) + + def test_sort_values_key(self): + arrays = [ + ["bar", "bar", "baz", "baz", "qux", "qux", "foo", "foo"], + ["one", "two", "one", "two", "one", "two", "one", "two"], + ] + tuples = zip(*arrays) + index = MultiIndex.from_tuples(tuples) + index = index.sort_values( # sort by third letter + key=lambda x: x.map(lambda entry: entry[2]) + ) + result = DataFrame(range(8), index=index) + + arrays = [ + ["foo", "foo", "bar", "bar", "qux", "qux", "baz", "baz"], + ["one", "two", "one", "two", "one", "two", "one", "two"], + ] + tuples = zip(*arrays) + index = MultiIndex.from_tuples(tuples) + expected = DataFrame(range(8), index=index) + + tm.assert_frame_equal(result, expected) + + def test_argsort_with_na(self): + # GH48495 + arrays = [ + array([2, NA, 1], dtype="Int64"), + array([1, 2, 3], dtype="Int64"), + ] + index = MultiIndex.from_arrays(arrays) + result = index.argsort() + expected = np.array([2, 0, 1], dtype=np.intp) + tm.assert_numpy_array_equal(result, expected) + + def test_sort_values_with_na(self): + # GH48495 + arrays = [ + array([2, NA, 1], dtype="Int64"), + array([1, 2, 3], dtype="Int64"), + ] + index = MultiIndex.from_arrays(arrays) + index = index.sort_values() + result = DataFrame(range(3), index=index) + + arrays = [ + array([1, 2, NA], dtype="Int64"), + array([3, 1, 2], dtype="Int64"), + ] + index = MultiIndex.from_arrays(arrays) + expected = DataFrame(range(3), index=index) + + tm.assert_frame_equal(result, expected) + + def test_frame_getitem_not_sorted(self, multiindex_dataframe_random_data): + frame = multiindex_dataframe_random_data + df = frame.T + df["foo", "four"] = "foo" + + arrays = [np.array(x) for x in zip(*df.columns.values)] + + result = df["foo"] + result2 = df.loc[:, "foo"] + expected = df.reindex(columns=df.columns[arrays[0] == "foo"]) + expected.columns = expected.columns.droplevel(0) + tm.assert_frame_equal(result, expected) + tm.assert_frame_equal(result2, expected) + + df = df.T + result = df.xs("foo") + result2 = df.loc["foo"] + expected = df.reindex(df.index[arrays[0] == "foo"]) + expected.index = expected.index.droplevel(0) + tm.assert_frame_equal(result, expected) + tm.assert_frame_equal(result2, expected) + + def test_series_getitem_not_sorted(self): + arrays = [ + ["bar", "bar", "baz", "baz", "qux", "qux", "foo", "foo"], + ["one", "two", "one", "two", "one", "two", "one", "two"], + ] + tuples = zip(*arrays) + index = MultiIndex.from_tuples(tuples) + s = Series(np.random.default_rng(2).standard_normal(8), index=index) + + arrays = [np.array(x) for x in zip(*index.values)] + + result = s["qux"] + result2 = s.loc["qux"] + expected = s[arrays[0] == "qux"] + expected.index = expected.index.droplevel(0) + tm.assert_series_equal(result, expected) + tm.assert_series_equal(result2, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_at.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_at.py new file mode 100644 index 0000000000000000000000000000000000000000..7504c984794e8d1b10d6b7d25d34817ecbb74127 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_at.py @@ -0,0 +1,252 @@ +from datetime import ( + datetime, + timezone, +) + +import numpy as np +import pytest + +from pandas.errors import InvalidIndexError + +from pandas import ( + CategoricalDtype, + CategoricalIndex, + DataFrame, + DatetimeIndex, + MultiIndex, + Series, + Timestamp, +) +import pandas._testing as tm + + +def test_at_timezone(): + # https://github.com/pandas-dev/pandas/issues/33544 + result = DataFrame({"foo": [datetime(2000, 1, 1)]}) + with tm.assert_produces_warning(FutureWarning, match="incompatible dtype"): + result.at[0, "foo"] = datetime(2000, 1, 2, tzinfo=timezone.utc) + expected = DataFrame( + {"foo": [datetime(2000, 1, 2, tzinfo=timezone.utc)]}, dtype=object + ) + tm.assert_frame_equal(result, expected) + + +def test_selection_methods_of_assigned_col(): + # GH 29282 + df = DataFrame(data={"a": [1, 2, 3], "b": [4, 5, 6]}) + df2 = DataFrame(data={"c": [7, 8, 9]}, index=[2, 1, 0]) + df["c"] = df2["c"] + df.at[1, "c"] = 11 + result = df + expected = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [9, 11, 7]}) + tm.assert_frame_equal(result, expected) + result = df.at[1, "c"] + assert result == 11 + + result = df["c"] + expected = Series([9, 11, 7], name="c") + tm.assert_series_equal(result, expected) + + result = df[["c"]] + expected = DataFrame({"c": [9, 11, 7]}) + tm.assert_frame_equal(result, expected) + + +class TestAtSetItem: + def test_at_setitem_item_cache_cleared(self): + # GH#22372 Note the multi-step construction is necessary to trigger + # the original bug. pandas/issues/22372#issuecomment-413345309 + df = DataFrame(index=[0]) + df["x"] = 1 + df["cost"] = 2 + + # accessing df["cost"] adds "cost" to the _item_cache + df["cost"] + + # This loc[[0]] lookup used to call _consolidate_inplace at the + # BlockManager level, which failed to clear the _item_cache + df.loc[[0]] + + df.at[0, "x"] = 4 + df.at[0, "cost"] = 789 + + expected = DataFrame({"x": [4], "cost": 789}, index=[0]) + tm.assert_frame_equal(df, expected) + + # And in particular, check that the _item_cache has updated correctly. + tm.assert_series_equal(df["cost"], expected["cost"]) + + def test_at_setitem_mixed_index_assignment(self): + # GH#19860 + ser = Series([1, 2, 3, 4, 5], index=["a", "b", "c", 1, 2]) + ser.at["a"] = 11 + assert ser.iat[0] == 11 + ser.at[1] = 22 + assert ser.iat[3] == 22 + + def test_at_setitem_categorical_missing(self): + df = DataFrame( + index=range(3), columns=range(3), dtype=CategoricalDtype(["foo", "bar"]) + ) + df.at[1, 1] = "foo" + + expected = DataFrame( + [ + [np.nan, np.nan, np.nan], + [np.nan, "foo", np.nan], + [np.nan, np.nan, np.nan], + ], + dtype=CategoricalDtype(["foo", "bar"]), + ) + + tm.assert_frame_equal(df, expected) + + def test_at_setitem_multiindex(self): + df = DataFrame( + np.zeros((3, 2), dtype="int64"), + columns=MultiIndex.from_tuples([("a", 0), ("a", 1)]), + ) + df.at[0, "a"] = 10 + expected = DataFrame( + [[10, 10], [0, 0], [0, 0]], + columns=MultiIndex.from_tuples([("a", 0), ("a", 1)]), + ) + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize("row", (Timestamp("2019-01-01"), "2019-01-01")) + def test_at_datetime_index(self, row): + # Set float64 dtype to avoid upcast when setting .5 + df = DataFrame( + data=[[1] * 2], index=DatetimeIndex(data=["2019-01-01", "2019-01-02"]) + ).astype({0: "float64"}) + expected = DataFrame( + data=[[0.5, 1], [1.0, 1]], + index=DatetimeIndex(data=["2019-01-01", "2019-01-02"]), + ) + + df.at[row, 0] = 0.5 + tm.assert_frame_equal(df, expected) + + +class TestAtSetItemWithExpansion: + def test_at_setitem_expansion_series_dt64tz_value(self, tz_naive_fixture): + # GH#25506 + ts = Timestamp("2017-08-05 00:00:00+0100", tz=tz_naive_fixture) + result = Series(ts) + result.at[1] = ts + expected = Series([ts, ts]) + tm.assert_series_equal(result, expected) + + +class TestAtWithDuplicates: + def test_at_with_duplicate_axes_requires_scalar_lookup(self): + # GH#33041 check that falling back to loc doesn't allow non-scalar + # args to slip in + + arr = np.random.default_rng(2).standard_normal(6).reshape(3, 2) + df = DataFrame(arr, columns=["A", "A"]) + + msg = "Invalid call for scalar access" + with pytest.raises(ValueError, match=msg): + df.at[[1, 2]] + with pytest.raises(ValueError, match=msg): + df.at[1, ["A"]] + with pytest.raises(ValueError, match=msg): + df.at[:, "A"] + + with pytest.raises(ValueError, match=msg): + df.at[[1, 2]] = 1 + with pytest.raises(ValueError, match=msg): + df.at[1, ["A"]] = 1 + with pytest.raises(ValueError, match=msg): + df.at[:, "A"] = 1 + + +class TestAtErrors: + # TODO: De-duplicate/parametrize + # test_at_series_raises_key_error2, test_at_frame_raises_key_error2 + + def test_at_series_raises_key_error(self, indexer_al): + # GH#31724 .at should match .loc + + ser = Series([1, 2, 3], index=[3, 2, 1]) + result = indexer_al(ser)[1] + assert result == 3 + + with pytest.raises(KeyError, match="a"): + indexer_al(ser)["a"] + + def test_at_frame_raises_key_error(self, indexer_al): + # GH#31724 .at should match .loc + + df = DataFrame({0: [1, 2, 3]}, index=[3, 2, 1]) + + result = indexer_al(df)[1, 0] + assert result == 3 + + with pytest.raises(KeyError, match="a"): + indexer_al(df)["a", 0] + + with pytest.raises(KeyError, match="a"): + indexer_al(df)[1, "a"] + + def test_at_series_raises_key_error2(self, indexer_al): + # at should not fallback + # GH#7814 + # GH#31724 .at should match .loc + ser = Series([1, 2, 3], index=list("abc")) + result = indexer_al(ser)["a"] + assert result == 1 + + with pytest.raises(KeyError, match="^0$"): + indexer_al(ser)[0] + + def test_at_frame_raises_key_error2(self, indexer_al): + # GH#31724 .at should match .loc + df = DataFrame({"A": [1, 2, 3]}, index=list("abc")) + result = indexer_al(df)["a", "A"] + assert result == 1 + + with pytest.raises(KeyError, match="^0$"): + indexer_al(df)["a", 0] + + def test_at_frame_multiple_columns(self): + # GH#48296 - at shouldn't modify multiple columns + df = DataFrame({"a": [1, 2], "b": [3, 4]}) + new_row = [6, 7] + with pytest.raises( + InvalidIndexError, + match=f"You can only assign a scalar value not a \\{type(new_row)}", + ): + df.at[5] = new_row + + def test_at_getitem_mixed_index_no_fallback(self): + # GH#19860 + ser = Series([1, 2, 3, 4, 5], index=["a", "b", "c", 1, 2]) + with pytest.raises(KeyError, match="^0$"): + ser.at[0] + with pytest.raises(KeyError, match="^4$"): + ser.at[4] + + def test_at_categorical_integers(self): + # CategoricalIndex with integer categories that don't happen to match + # the Categorical's codes + ci = CategoricalIndex([3, 4]) + + arr = np.arange(4).reshape(2, 2) + frame = DataFrame(arr, index=ci) + + for df in [frame, frame.T]: + for key in [0, 1]: + with pytest.raises(KeyError, match=str(key)): + df.at[key, key] + + def test_at_applied_for_rows(self): + # GH#48729 .at should raise InvalidIndexError when assigning rows + df = DataFrame(index=["a"], columns=["col1", "col2"]) + new_row = [123, 15] + with pytest.raises( + InvalidIndexError, + match=f"You can only assign a scalar value not a \\{type(new_row)}", + ): + df.at["a"] = new_row diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_categorical.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_categorical.py new file mode 100644 index 0000000000000000000000000000000000000000..1b58f8e8b983113e4a627e75cf6db7917c33866a --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_categorical.py @@ -0,0 +1,573 @@ +import re + +import numpy as np +import pytest + +import pandas.util._test_decorators as td + +import pandas as pd +from pandas import ( + Categorical, + CategoricalDtype, + CategoricalIndex, + DataFrame, + Index, + Interval, + Series, + Timedelta, + Timestamp, + option_context, +) +import pandas._testing as tm + + +@pytest.fixture +def df(): + return DataFrame( + { + "A": np.arange(6, dtype="int64"), + }, + index=CategoricalIndex( + list("aabbca"), dtype=CategoricalDtype(list("cab")), name="B" + ), + ) + + +@pytest.fixture +def df2(): + return DataFrame( + { + "A": np.arange(6, dtype="int64"), + }, + index=CategoricalIndex( + list("aabbca"), dtype=CategoricalDtype(list("cabe")), name="B" + ), + ) + + +class TestCategoricalIndex: + def test_loc_scalar(self, df): + dtype = CategoricalDtype(list("cab")) + result = df.loc["a"] + bidx = Series(list("aaa"), name="B").astype(dtype) + assert bidx.dtype == dtype + + expected = DataFrame({"A": [0, 1, 5]}, index=Index(bidx)) + tm.assert_frame_equal(result, expected) + + df = df.copy() + df.loc["a"] = 20 + bidx2 = Series(list("aabbca"), name="B").astype(dtype) + assert bidx2.dtype == dtype + expected = DataFrame( + { + "A": [20, 20, 2, 3, 4, 20], + }, + index=Index(bidx2), + ) + tm.assert_frame_equal(df, expected) + + # value not in the categories + with pytest.raises(KeyError, match=r"^'d'$"): + df.loc["d"] + + df2 = df.copy() + expected = df2.copy() + expected.index = expected.index.astype(object) + expected.loc["d"] = 10 + df2.loc["d"] = 10 + tm.assert_frame_equal(df2, expected) + + def test_loc_setitem_with_expansion_non_category(self, df): + # Setting-with-expansion with a new key "d" that is not among caegories + df.loc["a"] = 20 + + # Setting a new row on an existing column + df3 = df.copy() + df3.loc["d", "A"] = 10 + bidx3 = Index(list("aabbcad"), name="B") + expected3 = DataFrame( + { + "A": [20, 20, 2, 3, 4, 20, 10.0], + }, + index=Index(bidx3), + ) + tm.assert_frame_equal(df3, expected3) + + # Setting a new row _and_ new column + df4 = df.copy() + df4.loc["d", "C"] = 10 + expected3 = DataFrame( + { + "A": [20, 20, 2, 3, 4, 20, np.nan], + "C": [np.nan, np.nan, np.nan, np.nan, np.nan, np.nan, 10], + }, + index=Index(bidx3), + ) + tm.assert_frame_equal(df4, expected3) + + def test_loc_getitem_scalar_non_category(self, df): + with pytest.raises(KeyError, match="^1$"): + df.loc[1] + + def test_slicing(self): + cat = Series(Categorical([1, 2, 3, 4])) + reverse = cat[::-1] + exp = np.array([4, 3, 2, 1], dtype=np.int64) + tm.assert_numpy_array_equal(reverse.__array__(), exp) + + df = DataFrame({"value": (np.arange(100) + 1).astype("int64")}) + df["D"] = pd.cut(df.value, bins=[0, 25, 50, 75, 100]) + + expected = Series([11, Interval(0, 25)], index=["value", "D"], name=10) + result = df.iloc[10] + tm.assert_series_equal(result, expected) + + expected = DataFrame( + {"value": np.arange(11, 21).astype("int64")}, + index=np.arange(10, 20).astype("int64"), + ) + expected["D"] = pd.cut(expected.value, bins=[0, 25, 50, 75, 100]) + result = df.iloc[10:20] + tm.assert_frame_equal(result, expected) + + expected = Series([9, Interval(0, 25)], index=["value", "D"], name=8) + result = df.loc[8] + tm.assert_series_equal(result, expected) + + def test_slicing_and_getting_ops(self): + # systematically test the slicing operations: + # for all slicing ops: + # - returning a dataframe + # - returning a column + # - returning a row + # - returning a single value + + cats = Categorical( + ["a", "c", "b", "c", "c", "c", "c"], categories=["a", "b", "c"] + ) + idx = Index(["h", "i", "j", "k", "l", "m", "n"]) + values = [1, 2, 3, 4, 5, 6, 7] + df = DataFrame({"cats": cats, "values": values}, index=idx) + + # the expected values + cats2 = Categorical(["b", "c"], categories=["a", "b", "c"]) + idx2 = Index(["j", "k"]) + values2 = [3, 4] + + # 2:4,: | "j":"k",: + exp_df = DataFrame({"cats": cats2, "values": values2}, index=idx2) + + # :,"cats" | :,0 + exp_col = Series(cats, index=idx, name="cats") + + # "j",: | 2,: + exp_row = Series(["b", 3], index=["cats", "values"], dtype="object", name="j") + + # "j","cats | 2,0 + exp_val = "b" + + # iloc + # frame + res_df = df.iloc[2:4, :] + tm.assert_frame_equal(res_df, exp_df) + assert isinstance(res_df["cats"].dtype, CategoricalDtype) + + # row + res_row = df.iloc[2, :] + tm.assert_series_equal(res_row, exp_row) + assert isinstance(res_row["cats"], str) + + # col + res_col = df.iloc[:, 0] + tm.assert_series_equal(res_col, exp_col) + assert isinstance(res_col.dtype, CategoricalDtype) + + # single value + res_val = df.iloc[2, 0] + assert res_val == exp_val + + # loc + # frame + res_df = df.loc["j":"k", :] + tm.assert_frame_equal(res_df, exp_df) + assert isinstance(res_df["cats"].dtype, CategoricalDtype) + + # row + res_row = df.loc["j", :] + tm.assert_series_equal(res_row, exp_row) + assert isinstance(res_row["cats"], str) + + # col + res_col = df.loc[:, "cats"] + tm.assert_series_equal(res_col, exp_col) + assert isinstance(res_col.dtype, CategoricalDtype) + + # single value + res_val = df.loc["j", "cats"] + assert res_val == exp_val + + # single value + res_val = df.loc["j", df.columns[0]] + assert res_val == exp_val + + # iat + res_val = df.iat[2, 0] + assert res_val == exp_val + + # at + res_val = df.at["j", "cats"] + assert res_val == exp_val + + # fancy indexing + exp_fancy = df.iloc[[2]] + + res_fancy = df[df["cats"] == "b"] + tm.assert_frame_equal(res_fancy, exp_fancy) + res_fancy = df[df["values"] == 3] + tm.assert_frame_equal(res_fancy, exp_fancy) + + # get_value + res_val = df.at["j", "cats"] + assert res_val == exp_val + + # i : int, slice, or sequence of integers + res_row = df.iloc[2] + tm.assert_series_equal(res_row, exp_row) + assert isinstance(res_row["cats"], str) + + res_df = df.iloc[slice(2, 4)] + tm.assert_frame_equal(res_df, exp_df) + assert isinstance(res_df["cats"].dtype, CategoricalDtype) + + res_df = df.iloc[[2, 3]] + tm.assert_frame_equal(res_df, exp_df) + assert isinstance(res_df["cats"].dtype, CategoricalDtype) + + res_col = df.iloc[:, 0] + tm.assert_series_equal(res_col, exp_col) + assert isinstance(res_col.dtype, CategoricalDtype) + + res_df = df.iloc[:, slice(0, 2)] + tm.assert_frame_equal(res_df, df) + assert isinstance(res_df["cats"].dtype, CategoricalDtype) + + res_df = df.iloc[:, [0, 1]] + tm.assert_frame_equal(res_df, df) + assert isinstance(res_df["cats"].dtype, CategoricalDtype) + + def test_slicing_doc_examples(self): + # GH 7918 + cats = Categorical( + ["a", "b", "b", "b", "c", "c", "c"], categories=["a", "b", "c"] + ) + idx = Index(["h", "i", "j", "k", "l", "m", "n"]) + values = [1, 2, 2, 2, 3, 4, 5] + df = DataFrame({"cats": cats, "values": values}, index=idx) + + result = df.iloc[2:4, :] + expected = DataFrame( + { + "cats": Categorical(["b", "b"], categories=["a", "b", "c"]), + "values": [2, 2], + }, + index=["j", "k"], + ) + tm.assert_frame_equal(result, expected) + + result = df.iloc[2:4, :].dtypes + expected = Series(["category", "int64"], ["cats", "values"], dtype=object) + tm.assert_series_equal(result, expected) + + result = df.loc["h":"j", "cats"] + expected = Series( + Categorical(["a", "b", "b"], categories=["a", "b", "c"]), + index=["h", "i", "j"], + name="cats", + ) + tm.assert_series_equal(result, expected) + + result = df.loc["h":"j", df.columns[0:1]] + expected = DataFrame( + {"cats": Categorical(["a", "b", "b"], categories=["a", "b", "c"])}, + index=["h", "i", "j"], + ) + tm.assert_frame_equal(result, expected) + + def test_loc_getitem_listlike_labels(self, df): + # list of labels + result = df.loc[["c", "a"]] + expected = df.iloc[[4, 0, 1, 5]] + tm.assert_frame_equal(result, expected, check_index_type=True) + + def test_loc_getitem_listlike_unused_category(self, df2): + # GH#37901 a label that is in index.categories but not in index + # listlike containing an element in the categories but not in the values + with pytest.raises(KeyError, match=re.escape("['e'] not in index")): + df2.loc[["a", "b", "e"]] + + def test_loc_getitem_label_unused_category(self, df2): + # element in the categories but not in the values + with pytest.raises(KeyError, match=r"^'e'$"): + df2.loc["e"] + + def test_loc_getitem_non_category(self, df2): + # not all labels in the categories + with pytest.raises(KeyError, match=re.escape("['d'] not in index")): + df2.loc[["a", "d"]] + + def test_loc_setitem_expansion_label_unused_category(self, df2): + # assigning with a label that is in the categories but not in the index + df = df2.copy() + df.loc["e"] = 20 + result = df.loc[["a", "b", "e"]] + exp_index = CategoricalIndex(list("aaabbe"), categories=list("cabe"), name="B") + expected = DataFrame({"A": [0, 1, 5, 2, 3, 20]}, index=exp_index) + tm.assert_frame_equal(result, expected) + + def test_loc_listlike_dtypes(self): + # GH 11586 + + # unique categories and codes + index = CategoricalIndex(["a", "b", "c"]) + df = DataFrame({"A": [1, 2, 3], "B": [4, 5, 6]}, index=index) + + # unique slice + res = df.loc[["a", "b"]] + exp_index = CategoricalIndex(["a", "b"], categories=index.categories) + exp = DataFrame({"A": [1, 2], "B": [4, 5]}, index=exp_index) + tm.assert_frame_equal(res, exp, check_index_type=True) + + # duplicated slice + res = df.loc[["a", "a", "b"]] + + exp_index = CategoricalIndex(["a", "a", "b"], categories=index.categories) + exp = DataFrame({"A": [1, 1, 2], "B": [4, 4, 5]}, index=exp_index) + tm.assert_frame_equal(res, exp, check_index_type=True) + + with pytest.raises(KeyError, match=re.escape("['x'] not in index")): + df.loc[["a", "x"]] + + def test_loc_listlike_dtypes_duplicated_categories_and_codes(self): + # duplicated categories and codes + index = CategoricalIndex(["a", "b", "a"]) + df = DataFrame({"A": [1, 2, 3], "B": [4, 5, 6]}, index=index) + + # unique slice + res = df.loc[["a", "b"]] + exp = DataFrame( + {"A": [1, 3, 2], "B": [4, 6, 5]}, index=CategoricalIndex(["a", "a", "b"]) + ) + tm.assert_frame_equal(res, exp, check_index_type=True) + + # duplicated slice + res = df.loc[["a", "a", "b"]] + exp = DataFrame( + {"A": [1, 3, 1, 3, 2], "B": [4, 6, 4, 6, 5]}, + index=CategoricalIndex(["a", "a", "a", "a", "b"]), + ) + tm.assert_frame_equal(res, exp, check_index_type=True) + + with pytest.raises(KeyError, match=re.escape("['x'] not in index")): + df.loc[["a", "x"]] + + def test_loc_listlike_dtypes_unused_category(self): + # contains unused category + index = CategoricalIndex(["a", "b", "a", "c"], categories=list("abcde")) + df = DataFrame({"A": [1, 2, 3, 4], "B": [5, 6, 7, 8]}, index=index) + + res = df.loc[["a", "b"]] + exp = DataFrame( + {"A": [1, 3, 2], "B": [5, 7, 6]}, + index=CategoricalIndex(["a", "a", "b"], categories=list("abcde")), + ) + tm.assert_frame_equal(res, exp, check_index_type=True) + + # duplicated slice + res = df.loc[["a", "a", "b"]] + exp = DataFrame( + {"A": [1, 3, 1, 3, 2], "B": [5, 7, 5, 7, 6]}, + index=CategoricalIndex(["a", "a", "a", "a", "b"], categories=list("abcde")), + ) + tm.assert_frame_equal(res, exp, check_index_type=True) + + with pytest.raises(KeyError, match=re.escape("['x'] not in index")): + df.loc[["a", "x"]] + + def test_loc_getitem_listlike_unused_category_raises_keyerror(self): + # key that is an *unused* category raises + index = CategoricalIndex(["a", "b", "a", "c"], categories=list("abcde")) + df = DataFrame({"A": [1, 2, 3, 4], "B": [5, 6, 7, 8]}, index=index) + + with pytest.raises(KeyError, match="e"): + # For comparison, check the scalar behavior + df.loc["e"] + + with pytest.raises(KeyError, match=re.escape("['e'] not in index")): + df.loc[["a", "e"]] + + def test_ix_categorical_index(self): + # GH 12531 + df = DataFrame( + np.random.default_rng(2).standard_normal((3, 3)), + index=list("ABC"), + columns=list("XYZ"), + ) + cdf = df.copy() + cdf.index = CategoricalIndex(df.index) + cdf.columns = CategoricalIndex(df.columns) + + expect = Series(df.loc["A", :], index=cdf.columns, name="A") + tm.assert_series_equal(cdf.loc["A", :], expect) + + expect = Series(df.loc[:, "X"], index=cdf.index, name="X") + tm.assert_series_equal(cdf.loc[:, "X"], expect) + + exp_index = CategoricalIndex(list("AB"), categories=["A", "B", "C"]) + expect = DataFrame(df.loc[["A", "B"], :], columns=cdf.columns, index=exp_index) + tm.assert_frame_equal(cdf.loc[["A", "B"], :], expect) + + exp_columns = CategoricalIndex(list("XY"), categories=["X", "Y", "Z"]) + expect = DataFrame(df.loc[:, ["X", "Y"]], index=cdf.index, columns=exp_columns) + tm.assert_frame_equal(cdf.loc[:, ["X", "Y"]], expect) + + @pytest.mark.parametrize( + "infer_string", [False, pytest.param(True, marks=td.skip_if_no("pyarrow"))] + ) + def test_ix_categorical_index_non_unique(self, infer_string): + # non-unique + with option_context("future.infer_string", infer_string): + df = DataFrame( + np.random.default_rng(2).standard_normal((3, 3)), + index=list("ABA"), + columns=list("XYX"), + ) + cdf = df.copy() + cdf.index = CategoricalIndex(df.index) + cdf.columns = CategoricalIndex(df.columns) + + exp_index = CategoricalIndex(list("AA"), categories=["A", "B"]) + expect = DataFrame(df.loc["A", :], columns=cdf.columns, index=exp_index) + tm.assert_frame_equal(cdf.loc["A", :], expect) + + exp_columns = CategoricalIndex(list("XX"), categories=["X", "Y"]) + expect = DataFrame(df.loc[:, "X"], index=cdf.index, columns=exp_columns) + tm.assert_frame_equal(cdf.loc[:, "X"], expect) + + expect = DataFrame( + df.loc[["A", "B"], :], + columns=cdf.columns, + index=CategoricalIndex(list("AAB")), + ) + tm.assert_frame_equal(cdf.loc[["A", "B"], :], expect) + + expect = DataFrame( + df.loc[:, ["X", "Y"]], + index=cdf.index, + columns=CategoricalIndex(list("XXY")), + ) + tm.assert_frame_equal(cdf.loc[:, ["X", "Y"]], expect) + + def test_loc_slice(self, df): + # GH9748 + msg = ( + "cannot do slice indexing on CategoricalIndex with these " + r"indexers \[1\] of type int" + ) + with pytest.raises(TypeError, match=msg): + df.loc[1:5] + + result = df.loc["b":"c"] + expected = df.iloc[[2, 3, 4]] + tm.assert_frame_equal(result, expected) + + def test_loc_and_at_with_categorical_index(self): + # GH 20629 + df = DataFrame( + [[1, 2], [3, 4], [5, 6]], index=CategoricalIndex(["A", "B", "C"]) + ) + + s = df[0] + assert s.loc["A"] == 1 + assert s.at["A"] == 1 + + assert df.loc["B", 1] == 4 + assert df.at["B", 1] == 4 + + @pytest.mark.parametrize( + "idx_values", + [ + # python types + [1, 2, 3], + [-1, -2, -3], + [1.5, 2.5, 3.5], + [-1.5, -2.5, -3.5], + # numpy int/uint + *(np.array([1, 2, 3], dtype=dtype) for dtype in tm.ALL_INT_NUMPY_DTYPES), + # numpy floats + *(np.array([1.5, 2.5, 3.5], dtype=dtyp) for dtyp in tm.FLOAT_NUMPY_DTYPES), + # numpy object + np.array([1, "b", 3.5], dtype=object), + # pandas scalars + [Interval(1, 4), Interval(4, 6), Interval(6, 9)], + [Timestamp(2019, 1, 1), Timestamp(2019, 2, 1), Timestamp(2019, 3, 1)], + [Timedelta(1, "d"), Timedelta(2, "d"), Timedelta(3, "D")], + # pandas Integer arrays + *(pd.array([1, 2, 3], dtype=dtype) for dtype in tm.ALL_INT_EA_DTYPES), + # other pandas arrays + pd.IntervalIndex.from_breaks([1, 4, 6, 9]).array, + pd.date_range("2019-01-01", periods=3).array, + pd.timedelta_range(start="1d", periods=3).array, + ], + ) + def test_loc_getitem_with_non_string_categories(self, idx_values, ordered): + # GH-17569 + cat_idx = CategoricalIndex(idx_values, ordered=ordered) + df = DataFrame({"A": ["foo", "bar", "baz"]}, index=cat_idx) + sl = slice(idx_values[0], idx_values[1]) + + # scalar selection + result = df.loc[idx_values[0]] + expected = Series(["foo"], index=["A"], name=idx_values[0]) + tm.assert_series_equal(result, expected) + + # list selection + result = df.loc[idx_values[:2]] + expected = DataFrame(["foo", "bar"], index=cat_idx[:2], columns=["A"]) + tm.assert_frame_equal(result, expected) + + # slice selection + result = df.loc[sl] + expected = DataFrame(["foo", "bar"], index=cat_idx[:2], columns=["A"]) + tm.assert_frame_equal(result, expected) + + # scalar assignment + result = df.copy() + result.loc[idx_values[0]] = "qux" + expected = DataFrame({"A": ["qux", "bar", "baz"]}, index=cat_idx) + tm.assert_frame_equal(result, expected) + + # list assignment + result = df.copy() + result.loc[idx_values[:2], "A"] = ["qux", "qux2"] + expected = DataFrame({"A": ["qux", "qux2", "baz"]}, index=cat_idx) + tm.assert_frame_equal(result, expected) + + # slice assignment + result = df.copy() + result.loc[sl, "A"] = ["qux", "qux2"] + expected = DataFrame({"A": ["qux", "qux2", "baz"]}, index=cat_idx) + tm.assert_frame_equal(result, expected) + + def test_getitem_categorical_with_nan(self): + # GH#41933 + ci = CategoricalIndex(["A", "B", np.nan]) + + ser = Series(range(3), index=ci) + + assert ser[np.nan] == 2 + assert ser.loc[np.nan] == 2 + + df = DataFrame(ser) + assert df.loc[np.nan, 0] == 2 + assert df.loc[np.nan][0] == 2 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_chaining_and_caching.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_chaining_and_caching.py new file mode 100644 index 0000000000000000000000000000000000000000..b97df376ac47fd8b62f631e38133ae0c0251fd63 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_chaining_and_caching.py @@ -0,0 +1,647 @@ +from string import ascii_letters + +import numpy as np +import pytest + +from pandas.errors import ( + SettingWithCopyError, + SettingWithCopyWarning, +) +import pandas.util._test_decorators as td + +import pandas as pd +from pandas import ( + DataFrame, + Index, + Series, + Timestamp, + date_range, + option_context, +) +import pandas._testing as tm + +msg = "A value is trying to be set on a copy of a slice from a DataFrame" + + +def random_text(nobs=100): + # Construct a DataFrame where each row is a random slice from 'letters' + idxs = np.random.default_rng(2).integers(len(ascii_letters), size=(nobs, 2)) + idxs.sort(axis=1) + strings = [ascii_letters[x[0] : x[1]] for x in idxs] + + return DataFrame(strings, columns=["letters"]) + + +class TestCaching: + def test_slice_consolidate_invalidate_item_cache(self, using_copy_on_write): + # this is chained assignment, but will 'work' + with option_context("chained_assignment", None): + # #3970 + df = DataFrame({"aa": np.arange(5), "bb": [2.2] * 5}) + + # Creates a second float block + df["cc"] = 0.0 + + # caches a reference to the 'bb' series + df["bb"] + + # Assignment to wrong series + with tm.raises_chained_assignment_error(): + df["bb"].iloc[0] = 0.17 + df._clear_item_cache() + if not using_copy_on_write: + tm.assert_almost_equal(df["bb"][0], 0.17) + else: + # with ArrayManager, parent is not mutated with chained assignment + tm.assert_almost_equal(df["bb"][0], 2.2) + + @pytest.mark.parametrize("do_ref", [True, False]) + def test_setitem_cache_updating(self, do_ref): + # GH 5424 + cont = ["one", "two", "three", "four", "five", "six", "seven"] + + df = DataFrame({"a": cont, "b": cont[3:] + cont[:3], "c": np.arange(7)}) + + # ref the cache + if do_ref: + df.loc[0, "c"] + + # set it + df.loc[7, "c"] = 1 + + assert df.loc[0, "c"] == 0.0 + assert df.loc[7, "c"] == 1.0 + + def test_setitem_cache_updating_slices( + self, using_copy_on_write, warn_copy_on_write + ): + # GH 7084 + # not updating cache on series setting with slices + expected = DataFrame( + {"A": [600, 600, 600]}, index=date_range("5/7/2014", "5/9/2014") + ) + out = DataFrame({"A": [0, 0, 0]}, index=date_range("5/7/2014", "5/9/2014")) + df = DataFrame({"C": ["A", "A", "A"], "D": [100, 200, 300]}) + + # loop through df to update out + six = Timestamp("5/7/2014") + eix = Timestamp("5/9/2014") + for ix, row in df.iterrows(): + out.loc[six:eix, row["C"]] = out.loc[six:eix, row["C"]] + row["D"] + + tm.assert_frame_equal(out, expected) + tm.assert_series_equal(out["A"], expected["A"]) + + # try via a chain indexing + # this actually works + out = DataFrame({"A": [0, 0, 0]}, index=date_range("5/7/2014", "5/9/2014")) + out_original = out.copy() + for ix, row in df.iterrows(): + v = out[row["C"]][six:eix] + row["D"] + with tm.raises_chained_assignment_error( + (ix == 0) or warn_copy_on_write or using_copy_on_write + ): + out[row["C"]][six:eix] = v + + if not using_copy_on_write: + tm.assert_frame_equal(out, expected) + tm.assert_series_equal(out["A"], expected["A"]) + else: + tm.assert_frame_equal(out, out_original) + tm.assert_series_equal(out["A"], out_original["A"]) + + out = DataFrame({"A": [0, 0, 0]}, index=date_range("5/7/2014", "5/9/2014")) + for ix, row in df.iterrows(): + out.loc[six:eix, row["C"]] += row["D"] + + tm.assert_frame_equal(out, expected) + tm.assert_series_equal(out["A"], expected["A"]) + + def test_altering_series_clears_parent_cache( + self, using_copy_on_write, warn_copy_on_write + ): + # GH #33675 + df = DataFrame([[1, 2], [3, 4]], index=["a", "b"], columns=["A", "B"]) + ser = df["A"] + + if using_copy_on_write or warn_copy_on_write: + assert "A" not in df._item_cache + else: + assert "A" in df._item_cache + + # Adding a new entry to ser swaps in a new array, so "A" needs to + # be removed from df._item_cache + ser["c"] = 5 + assert len(ser) == 3 + assert "A" not in df._item_cache + assert df["A"] is not ser + assert len(df["A"]) == 2 + + +class TestChaining: + def test_setitem_chained_setfault(self, using_copy_on_write): + # GH6026 + data = ["right", "left", "left", "left", "right", "left", "timeout"] + mdata = ["right", "left", "left", "left", "right", "left", "none"] + + df = DataFrame({"response": np.array(data)}) + mask = df.response == "timeout" + with tm.raises_chained_assignment_error(): + df.response[mask] = "none" + if using_copy_on_write: + tm.assert_frame_equal(df, DataFrame({"response": data})) + else: + tm.assert_frame_equal(df, DataFrame({"response": mdata})) + + recarray = np.rec.fromarrays([data], names=["response"]) + df = DataFrame(recarray) + mask = df.response == "timeout" + with tm.raises_chained_assignment_error(): + df.response[mask] = "none" + if using_copy_on_write: + tm.assert_frame_equal(df, DataFrame({"response": data})) + else: + tm.assert_frame_equal(df, DataFrame({"response": mdata})) + + df = DataFrame({"response": data, "response1": data}) + df_original = df.copy() + mask = df.response == "timeout" + with tm.raises_chained_assignment_error(): + df.response[mask] = "none" + if using_copy_on_write: + tm.assert_frame_equal(df, df_original) + else: + tm.assert_frame_equal(df, DataFrame({"response": mdata, "response1": data})) + + # GH 6056 + expected = DataFrame({"A": [np.nan, "bar", "bah", "foo", "bar"]}) + df = DataFrame({"A": np.array(["foo", "bar", "bah", "foo", "bar"])}) + with tm.raises_chained_assignment_error(): + df["A"].iloc[0] = np.nan + if using_copy_on_write: + expected = DataFrame({"A": ["foo", "bar", "bah", "foo", "bar"]}) + else: + expected = DataFrame({"A": [np.nan, "bar", "bah", "foo", "bar"]}) + result = df.head() + tm.assert_frame_equal(result, expected) + + df = DataFrame({"A": np.array(["foo", "bar", "bah", "foo", "bar"])}) + with tm.raises_chained_assignment_error(): + df.A.iloc[0] = np.nan + result = df.head() + tm.assert_frame_equal(result, expected) + + @pytest.mark.arm_slow + def test_detect_chained_assignment(self, using_copy_on_write): + with option_context("chained_assignment", "raise"): + # work with the chain + expected = DataFrame([[-5, 1], [-6, 3]], columns=list("AB")) + df = DataFrame( + np.arange(4).reshape(2, 2), columns=list("AB"), dtype="int64" + ) + df_original = df.copy() + assert df._is_copy is None + + with tm.raises_chained_assignment_error(): + df["A"][0] = -5 + with tm.raises_chained_assignment_error(): + df["A"][1] = -6 + if using_copy_on_write: + tm.assert_frame_equal(df, df_original) + else: + tm.assert_frame_equal(df, expected) + + @pytest.mark.arm_slow + def test_detect_chained_assignment_raises( + self, using_array_manager, using_copy_on_write, warn_copy_on_write + ): + # test with the chaining + df = DataFrame( + { + "A": Series(range(2), dtype="int64"), + "B": np.array(np.arange(2, 4), dtype=np.float64), + } + ) + df_original = df.copy() + assert df._is_copy is None + + if using_copy_on_write: + with tm.raises_chained_assignment_error(): + df["A"][0] = -5 + with tm.raises_chained_assignment_error(): + df["A"][1] = -6 + tm.assert_frame_equal(df, df_original) + elif warn_copy_on_write: + with tm.raises_chained_assignment_error(): + df["A"][0] = -5 + with tm.raises_chained_assignment_error(): + df["A"][1] = np.nan + elif not using_array_manager: + with pytest.raises(SettingWithCopyError, match=msg): + with tm.raises_chained_assignment_error(): + df["A"][0] = -5 + + with pytest.raises(SettingWithCopyError, match=msg): + with tm.raises_chained_assignment_error(): + df["A"][1] = np.nan + + assert df["A"]._is_copy is None + else: + # INFO(ArrayManager) for ArrayManager it doesn't matter that it's + # a mixed dataframe + df["A"][0] = -5 + df["A"][1] = -6 + expected = DataFrame([[-5, 2], [-6, 3]], columns=list("AB")) + expected["B"] = expected["B"].astype("float64") + tm.assert_frame_equal(df, expected) + + @pytest.mark.arm_slow + def test_detect_chained_assignment_fails( + self, using_copy_on_write, warn_copy_on_write + ): + # Using a copy (the chain), fails + df = DataFrame( + { + "A": Series(range(2), dtype="int64"), + "B": np.array(np.arange(2, 4), dtype=np.float64), + } + ) + + if using_copy_on_write or warn_copy_on_write: + with tm.raises_chained_assignment_error(): + df.loc[0]["A"] = -5 + else: + with pytest.raises(SettingWithCopyError, match=msg): + df.loc[0]["A"] = -5 + + @pytest.mark.arm_slow + def test_detect_chained_assignment_doc_example( + self, using_copy_on_write, warn_copy_on_write + ): + # Doc example + df = DataFrame( + { + "a": ["one", "one", "two", "three", "two", "one", "six"], + "c": Series(range(7), dtype="int64"), + } + ) + assert df._is_copy is None + + indexer = df.a.str.startswith("o") + if using_copy_on_write or warn_copy_on_write: + with tm.raises_chained_assignment_error(): + df[indexer]["c"] = 42 + else: + with pytest.raises(SettingWithCopyError, match=msg): + df[indexer]["c"] = 42 + + @pytest.mark.arm_slow + def test_detect_chained_assignment_object_dtype( + self, using_array_manager, using_copy_on_write, warn_copy_on_write + ): + expected = DataFrame({"A": [111, "bbb", "ccc"], "B": [1, 2, 3]}) + df = DataFrame( + {"A": Series(["aaa", "bbb", "ccc"], dtype=object), "B": [1, 2, 3]} + ) + df_original = df.copy() + + if not using_copy_on_write and not warn_copy_on_write: + with pytest.raises(SettingWithCopyError, match=msg): + df.loc[0]["A"] = 111 + + if using_copy_on_write: + with tm.raises_chained_assignment_error(): + df["A"][0] = 111 + tm.assert_frame_equal(df, df_original) + elif warn_copy_on_write: + with tm.raises_chained_assignment_error(): + df["A"][0] = 111 + tm.assert_frame_equal(df, expected) + elif not using_array_manager: + with pytest.raises(SettingWithCopyError, match=msg): + with tm.raises_chained_assignment_error(): + df["A"][0] = 111 + + df.loc[0, "A"] = 111 + tm.assert_frame_equal(df, expected) + else: + # INFO(ArrayManager) for ArrayManager it doesn't matter that it's + # a mixed dataframe + df["A"][0] = 111 + tm.assert_frame_equal(df, expected) + + @pytest.mark.arm_slow + def test_detect_chained_assignment_is_copy_pickle(self): + # gh-5475: Make sure that is_copy is picked up reconstruction + df = DataFrame({"A": [1, 2]}) + assert df._is_copy is None + + with tm.ensure_clean("__tmp__pickle") as path: + df.to_pickle(path) + df2 = pd.read_pickle(path) + df2["B"] = df2["A"] + df2["B"] = df2["A"] + + @pytest.mark.arm_slow + def test_detect_chained_assignment_setting_entire_column(self): + # gh-5597: a spurious raise as we are setting the entire column here + + df = random_text(100000) + + # Always a copy + x = df.iloc[[0, 1, 2]] + assert x._is_copy is not None + + x = df.iloc[[0, 1, 2, 4]] + assert x._is_copy is not None + + # Explicitly copy + indexer = df.letters.apply(lambda x: len(x) > 10) + df = df.loc[indexer].copy() + + assert df._is_copy is None + df["letters"] = df["letters"].apply(str.lower) + + @pytest.mark.arm_slow + def test_detect_chained_assignment_implicit_take(self): + # Implicitly take + df = random_text(100000) + indexer = df.letters.apply(lambda x: len(x) > 10) + df = df.loc[indexer] + + assert df._is_copy is not None + df["letters"] = df["letters"].apply(str.lower) + + @pytest.mark.arm_slow + def test_detect_chained_assignment_implicit_take2( + self, using_copy_on_write, warn_copy_on_write + ): + if using_copy_on_write or warn_copy_on_write: + pytest.skip("_is_copy is not always set for CoW") + # Implicitly take 2 + df = random_text(100000) + indexer = df.letters.apply(lambda x: len(x) > 10) + + df = df.loc[indexer] + assert df._is_copy is not None + df.loc[:, "letters"] = df["letters"].apply(str.lower) + + # with the enforcement of #45333 in 2.0, the .loc[:, letters] setting + # is inplace, so df._is_copy remains non-None. + assert df._is_copy is not None + + df["letters"] = df["letters"].apply(str.lower) + assert df._is_copy is None + + @pytest.mark.arm_slow + def test_detect_chained_assignment_str(self): + df = random_text(100000) + indexer = df.letters.apply(lambda x: len(x) > 10) + df.loc[indexer, "letters"] = df.loc[indexer, "letters"].apply(str.lower) + + @pytest.mark.arm_slow + def test_detect_chained_assignment_is_copy(self): + # an identical take, so no copy + df = DataFrame({"a": [1]}).dropna() + assert df._is_copy is None + df["a"] += 1 + + @pytest.mark.arm_slow + def test_detect_chained_assignment_sorting(self): + df = DataFrame(np.random.default_rng(2).standard_normal((10, 4))) + ser = df.iloc[:, 0].sort_values() + + tm.assert_series_equal(ser, df.iloc[:, 0].sort_values()) + tm.assert_series_equal(ser, df[0].sort_values()) + + @pytest.mark.arm_slow + def test_detect_chained_assignment_false_positives(self): + # see gh-6025: false positives + df = DataFrame({"column1": ["a", "a", "a"], "column2": [4, 8, 9]}) + str(df) + + df["column1"] = df["column1"] + "b" + str(df) + + df = df[df["column2"] != 8] + str(df) + + df["column1"] = df["column1"] + "c" + str(df) + + @pytest.mark.arm_slow + def test_detect_chained_assignment_undefined_column( + self, using_copy_on_write, warn_copy_on_write + ): + # from SO: + # https://stackoverflow.com/questions/24054495/potential-bug-setting-value-for-undefined-column-using-iloc + df = DataFrame(np.arange(0, 9), columns=["count"]) + df["group"] = "b" + df_original = df.copy() + + if using_copy_on_write: + with tm.raises_chained_assignment_error(): + df.iloc[0:5]["group"] = "a" + tm.assert_frame_equal(df, df_original) + elif warn_copy_on_write: + with tm.raises_chained_assignment_error(): + df.iloc[0:5]["group"] = "a" + else: + with pytest.raises(SettingWithCopyError, match=msg): + with tm.raises_chained_assignment_error(): + df.iloc[0:5]["group"] = "a" + + @pytest.mark.arm_slow + def test_detect_chained_assignment_changing_dtype( + self, using_array_manager, using_copy_on_write, warn_copy_on_write + ): + # Mixed type setting but same dtype & changing dtype + df = DataFrame( + { + "A": date_range("20130101", periods=5), + "B": np.random.default_rng(2).standard_normal(5), + "C": np.arange(5, dtype="int64"), + "D": ["a", "b", "c", "d", "e"], + } + ) + df_original = df.copy() + + if using_copy_on_write or warn_copy_on_write: + with tm.raises_chained_assignment_error(): + df.loc[2]["D"] = "foo" + with tm.raises_chained_assignment_error(): + df.loc[2]["C"] = "foo" + tm.assert_frame_equal(df, df_original) + with tm.raises_chained_assignment_error(extra_warnings=(FutureWarning,)): + df["C"][2] = "foo" + if using_copy_on_write: + tm.assert_frame_equal(df, df_original) + else: + assert df.loc[2, "C"] == "foo" + else: + with pytest.raises(SettingWithCopyError, match=msg): + df.loc[2]["D"] = "foo" + + with pytest.raises(SettingWithCopyError, match=msg): + df.loc[2]["C"] = "foo" + + if not using_array_manager: + with pytest.raises(SettingWithCopyError, match=msg): + with tm.raises_chained_assignment_error(): + df["C"][2] = "foo" + else: + # INFO(ArrayManager) for ArrayManager it doesn't matter if it's + # changing the dtype or not + df["C"][2] = "foo" + assert df.loc[2, "C"] == "foo" + + def test_setting_with_copy_bug(self, using_copy_on_write, warn_copy_on_write): + # operating on a copy + df = DataFrame( + {"a": list(range(4)), "b": list("ab.."), "c": ["a", "b", np.nan, "d"]} + ) + df_original = df.copy() + mask = pd.isna(df.c) + + if using_copy_on_write: + with tm.raises_chained_assignment_error(): + df[["c"]][mask] = df[["b"]][mask] + tm.assert_frame_equal(df, df_original) + elif warn_copy_on_write: + with tm.raises_chained_assignment_error(): + df[["c"]][mask] = df[["b"]][mask] + else: + with pytest.raises(SettingWithCopyError, match=msg): + df[["c"]][mask] = df[["b"]][mask] + + def test_setting_with_copy_bug_no_warning(self): + # invalid warning as we are returning a new object + # GH 8730 + df1 = DataFrame({"x": Series(["a", "b", "c"]), "y": Series(["d", "e", "f"])}) + df2 = df1[["x"]] + + # this should not raise + df2["y"] = ["g", "h", "i"] + + def test_detect_chained_assignment_warnings_errors( + self, using_copy_on_write, warn_copy_on_write + ): + df = DataFrame({"A": ["aaa", "bbb", "ccc"], "B": [1, 2, 3]}) + if using_copy_on_write or warn_copy_on_write: + with tm.raises_chained_assignment_error(): + df.loc[0]["A"] = 111 + return + + with option_context("chained_assignment", "warn"): + with tm.assert_produces_warning(SettingWithCopyWarning): + df.loc[0]["A"] = 111 + + with option_context("chained_assignment", "raise"): + with pytest.raises(SettingWithCopyError, match=msg): + df.loc[0]["A"] = 111 + + @pytest.mark.parametrize("rhs", [3, DataFrame({0: [1, 2, 3, 4]})]) + def test_detect_chained_assignment_warning_stacklevel( + self, rhs, using_copy_on_write, warn_copy_on_write + ): + # GH#42570 + df = DataFrame(np.arange(25).reshape(5, 5)) + df_original = df.copy() + chained = df.loc[:3] + with option_context("chained_assignment", "warn"): + if not using_copy_on_write and not warn_copy_on_write: + with tm.assert_produces_warning(SettingWithCopyWarning) as t: + chained[2] = rhs + assert t[0].filename == __file__ + else: + # INFO(CoW) no warning, and original dataframe not changed + chained[2] = rhs + tm.assert_frame_equal(df, df_original) + + # TODO(ArrayManager) fast_xs with array-like scalars is not yet working + @td.skip_array_manager_not_yet_implemented + def test_chained_getitem_with_lists(self): + # GH6394 + # Regression in chained getitem indexing with embedded list-like from + # 0.12 + + df = DataFrame({"A": 5 * [np.zeros(3)], "B": 5 * [np.ones(3)]}) + expected = df["A"].iloc[2] + result = df.loc[2, "A"] + tm.assert_numpy_array_equal(result, expected) + result2 = df.iloc[2]["A"] + tm.assert_numpy_array_equal(result2, expected) + result3 = df["A"].loc[2] + tm.assert_numpy_array_equal(result3, expected) + result4 = df["A"].iloc[2] + tm.assert_numpy_array_equal(result4, expected) + + def test_cache_updating(self): + # GH 4939, make sure to update the cache on setitem + + df = DataFrame( + np.zeros((10, 4)), + columns=Index(list("ABCD"), dtype=object), + ) + df["A"] # cache series + df.loc["Hello Friend"] = df.iloc[0] + assert "Hello Friend" in df["A"].index + assert "Hello Friend" in df["B"].index + + def test_cache_updating2(self, using_copy_on_write): + # 10264 + df = DataFrame( + np.zeros((5, 5), dtype="int64"), + columns=["a", "b", "c", "d", "e"], + index=range(5), + ) + df["f"] = 0 + df_orig = df.copy() + if using_copy_on_write: + with pytest.raises(ValueError, match="read-only"): + df.f.values[3] = 1 + tm.assert_frame_equal(df, df_orig) + return + + df.f.values[3] = 1 + + df.f.values[3] = 2 + expected = DataFrame( + np.zeros((5, 6), dtype="int64"), + columns=["a", "b", "c", "d", "e", "f"], + index=range(5), + ) + expected.at[3, "f"] = 2 + tm.assert_frame_equal(df, expected) + expected = Series([0, 0, 0, 2, 0], name="f") + tm.assert_series_equal(df.f, expected) + + def test_iloc_setitem_chained_assignment(self, using_copy_on_write): + # GH#3970 + with option_context("chained_assignment", None): + df = DataFrame({"aa": range(5), "bb": [2.2] * 5}) + df["cc"] = 0.0 + + ck = [True] * len(df) + + with tm.raises_chained_assignment_error(): + df["bb"].iloc[0] = 0.13 + + # GH#3970 this lookup used to break the chained setting to 0.15 + df.iloc[ck] + + with tm.raises_chained_assignment_error(): + df["bb"].iloc[0] = 0.15 + + if not using_copy_on_write: + assert df["bb"].iloc[0] == 0.15 + else: + assert df["bb"].iloc[0] == 2.2 + + def test_getitem_loc_assignment_slice_state(self): + # GH 13569 + df = DataFrame({"a": [10, 20, 30]}) + with tm.raises_chained_assignment_error(): + df["a"].loc[4] = 40 + tm.assert_frame_equal(df, DataFrame({"a": [10, 20, 30]})) + tm.assert_series_equal(df["a"], Series([10, 20, 30], name="a")) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_check_indexer.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_check_indexer.py new file mode 100644 index 0000000000000000000000000000000000000000..975a31b873792c6afe59a23e5fef43b56ce7e46e --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_check_indexer.py @@ -0,0 +1,105 @@ +import numpy as np +import pytest + +import pandas as pd +import pandas._testing as tm +from pandas.api.indexers import check_array_indexer + + +@pytest.mark.parametrize( + "indexer, expected", + [ + # integer + ([1, 2], np.array([1, 2], dtype=np.intp)), + (np.array([1, 2], dtype="int64"), np.array([1, 2], dtype=np.intp)), + (pd.array([1, 2], dtype="Int32"), np.array([1, 2], dtype=np.intp)), + (pd.Index([1, 2]), np.array([1, 2], dtype=np.intp)), + # boolean + ([True, False, True], np.array([True, False, True], dtype=np.bool_)), + (np.array([True, False, True]), np.array([True, False, True], dtype=np.bool_)), + ( + pd.array([True, False, True], dtype="boolean"), + np.array([True, False, True], dtype=np.bool_), + ), + # other + ([], np.array([], dtype=np.intp)), + ], +) +def test_valid_input(indexer, expected): + arr = np.array([1, 2, 3]) + result = check_array_indexer(arr, indexer) + tm.assert_numpy_array_equal(result, expected) + + +@pytest.mark.parametrize( + "indexer", [[True, False, None], pd.array([True, False, None], dtype="boolean")] +) +def test_boolean_na_returns_indexer(indexer): + # https://github.com/pandas-dev/pandas/issues/31503 + arr = np.array([1, 2, 3]) + + result = check_array_indexer(arr, indexer) + expected = np.array([True, False, False], dtype=bool) + + tm.assert_numpy_array_equal(result, expected) + + +@pytest.mark.parametrize( + "indexer", + [ + [True, False], + pd.array([True, False], dtype="boolean"), + np.array([True, False], dtype=np.bool_), + ], +) +def test_bool_raise_length(indexer): + arr = np.array([1, 2, 3]) + + msg = "Boolean index has wrong length" + with pytest.raises(IndexError, match=msg): + check_array_indexer(arr, indexer) + + +@pytest.mark.parametrize( + "indexer", [[0, 1, None], pd.array([0, 1, pd.NA], dtype="Int64")] +) +def test_int_raise_missing_values(indexer): + arr = np.array([1, 2, 3]) + + msg = "Cannot index with an integer indexer containing NA values" + with pytest.raises(ValueError, match=msg): + check_array_indexer(arr, indexer) + + +@pytest.mark.parametrize( + "indexer", + [ + [0.0, 1.0], + np.array([1.0, 2.0], dtype="float64"), + np.array([True, False], dtype=object), + pd.Index([True, False], dtype=object), + ], +) +def test_raise_invalid_array_dtypes(indexer): + arr = np.array([1, 2, 3]) + + msg = "arrays used as indices must be of integer or boolean type" + with pytest.raises(IndexError, match=msg): + check_array_indexer(arr, indexer) + + +def test_raise_nullable_string_dtype(nullable_string_dtype): + indexer = pd.array(["a", "b"], dtype=nullable_string_dtype) + arr = np.array([1, 2, 3]) + + msg = "arrays used as indices must be of integer or boolean type" + with pytest.raises(IndexError, match=msg): + check_array_indexer(arr, indexer) + + +@pytest.mark.parametrize("indexer", [None, Ellipsis, slice(0, 3), (None,)]) +def test_pass_through_non_array_likes(indexer): + arr = np.array([1, 2, 3]) + + result = check_array_indexer(arr, indexer) + assert result == indexer diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_coercion.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_coercion.py new file mode 100644 index 0000000000000000000000000000000000000000..ecc640cfd05712e4367d46fcc5160cf0112f510b --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_coercion.py @@ -0,0 +1,941 @@ +from __future__ import annotations + +from datetime import ( + datetime, + timedelta, +) +import itertools + +import numpy as np +import pytest + +from pandas.compat import ( + IS64, + is_platform_windows, +) +from pandas.compat.numpy import np_version_gt2 + +import pandas as pd +import pandas._testing as tm + +############################################################### +# Index / Series common tests which may trigger dtype coercions +############################################################### + + +@pytest.fixture(autouse=True, scope="class") +def check_comprehensiveness(request): + # Iterate over combination of dtype, method and klass + # and ensure that each are contained within a collected test + cls = request.cls + combos = itertools.product(cls.klasses, cls.dtypes, [cls.method]) + + def has_test(combo): + klass, dtype, method = combo + cls_funcs = request.node.session.items + return any( + klass in x.name and dtype in x.name and method in x.name for x in cls_funcs + ) + + opts = request.config.option + if opts.lf or opts.keyword: + # If we are running with "last-failed" or -k foo, we expect to only + # run a subset of tests. + yield + + else: + for combo in combos: + if not has_test(combo): + raise AssertionError( + f"test method is not defined: {cls.__name__}, {combo}" + ) + + yield + + +class CoercionBase: + klasses = ["index", "series"] + dtypes = [ + "object", + "int64", + "float64", + "complex128", + "bool", + "datetime64", + "datetime64tz", + "timedelta64", + "period", + ] + + @property + def method(self): + raise NotImplementedError(self) + + +class TestSetitemCoercion(CoercionBase): + method = "setitem" + + # disable comprehensiveness tests, as most of these have been moved to + # tests.series.indexing.test_setitem in SetitemCastingEquivalents subclasses. + klasses: list[str] = [] + + def test_setitem_series_no_coercion_from_values_list(self): + # GH35865 - int casted to str when internally calling np.array(ser.values) + ser = pd.Series(["a", 1]) + ser[:] = list(ser.values) + + expected = pd.Series(["a", 1]) + + tm.assert_series_equal(ser, expected) + + def _assert_setitem_index_conversion( + self, original_series, loc_key, expected_index, expected_dtype + ): + """test index's coercion triggered by assign key""" + temp = original_series.copy() + # GH#33469 pre-2.0 with int loc_key and temp.index.dtype == np.float64 + # `temp[loc_key] = 5` treated loc_key as positional + temp[loc_key] = 5 + exp = pd.Series([1, 2, 3, 4, 5], index=expected_index) + tm.assert_series_equal(temp, exp) + # check dtype explicitly for sure + assert temp.index.dtype == expected_dtype + + temp = original_series.copy() + temp.loc[loc_key] = 5 + exp = pd.Series([1, 2, 3, 4, 5], index=expected_index) + tm.assert_series_equal(temp, exp) + # check dtype explicitly for sure + assert temp.index.dtype == expected_dtype + + @pytest.mark.parametrize( + "val,exp_dtype", [("x", object), (5, IndexError), (1.1, object)] + ) + def test_setitem_index_object(self, val, exp_dtype): + obj = pd.Series([1, 2, 3, 4], index=pd.Index(list("abcd"), dtype=object)) + assert obj.index.dtype == object + + if exp_dtype is IndexError: + temp = obj.copy() + warn_msg = "Series.__setitem__ treating keys as positions is deprecated" + msg = "index 5 is out of bounds for axis 0 with size 4" + with pytest.raises(exp_dtype, match=msg): + with tm.assert_produces_warning(FutureWarning, match=warn_msg): + temp[5] = 5 + else: + exp_index = pd.Index(list("abcd") + [val], dtype=object) + self._assert_setitem_index_conversion(obj, val, exp_index, exp_dtype) + + @pytest.mark.parametrize( + "val,exp_dtype", [(5, np.int64), (1.1, np.float64), ("x", object)] + ) + def test_setitem_index_int64(self, val, exp_dtype): + obj = pd.Series([1, 2, 3, 4]) + assert obj.index.dtype == np.int64 + + exp_index = pd.Index([0, 1, 2, 3, val]) + self._assert_setitem_index_conversion(obj, val, exp_index, exp_dtype) + + @pytest.mark.parametrize( + "val,exp_dtype", [(5, np.float64), (5.1, np.float64), ("x", object)] + ) + def test_setitem_index_float64(self, val, exp_dtype, request): + obj = pd.Series([1, 2, 3, 4], index=[1.1, 2.1, 3.1, 4.1]) + assert obj.index.dtype == np.float64 + + exp_index = pd.Index([1.1, 2.1, 3.1, 4.1, val]) + self._assert_setitem_index_conversion(obj, val, exp_index, exp_dtype) + + @pytest.mark.xfail(reason="Test not implemented") + def test_setitem_series_period(self): + raise NotImplementedError + + @pytest.mark.xfail(reason="Test not implemented") + def test_setitem_index_complex128(self): + raise NotImplementedError + + @pytest.mark.xfail(reason="Test not implemented") + def test_setitem_index_bool(self): + raise NotImplementedError + + @pytest.mark.xfail(reason="Test not implemented") + def test_setitem_index_datetime64(self): + raise NotImplementedError + + @pytest.mark.xfail(reason="Test not implemented") + def test_setitem_index_datetime64tz(self): + raise NotImplementedError + + @pytest.mark.xfail(reason="Test not implemented") + def test_setitem_index_timedelta64(self): + raise NotImplementedError + + @pytest.mark.xfail(reason="Test not implemented") + def test_setitem_index_period(self): + raise NotImplementedError + + +class TestInsertIndexCoercion(CoercionBase): + klasses = ["index"] + method = "insert" + + def _assert_insert_conversion(self, original, value, expected, expected_dtype): + """test coercion triggered by insert""" + target = original.copy() + res = target.insert(1, value) + tm.assert_index_equal(res, expected) + assert res.dtype == expected_dtype + + @pytest.mark.parametrize( + "insert, coerced_val, coerced_dtype", + [ + (1, 1, object), + (1.1, 1.1, object), + (False, False, object), + ("x", "x", object), + ], + ) + def test_insert_index_object(self, insert, coerced_val, coerced_dtype): + obj = pd.Index(list("abcd"), dtype=object) + assert obj.dtype == object + + exp = pd.Index(["a", coerced_val, "b", "c", "d"], dtype=object) + self._assert_insert_conversion(obj, insert, exp, coerced_dtype) + + @pytest.mark.parametrize( + "insert, coerced_val, coerced_dtype", + [ + (1, 1, None), + (1.1, 1.1, np.float64), + (False, False, object), # GH#36319 + ("x", "x", object), + ], + ) + def test_insert_int_index( + self, any_int_numpy_dtype, insert, coerced_val, coerced_dtype + ): + dtype = any_int_numpy_dtype + obj = pd.Index([1, 2, 3, 4], dtype=dtype) + coerced_dtype = coerced_dtype if coerced_dtype is not None else dtype + + exp = pd.Index([1, coerced_val, 2, 3, 4], dtype=coerced_dtype) + self._assert_insert_conversion(obj, insert, exp, coerced_dtype) + + @pytest.mark.parametrize( + "insert, coerced_val, coerced_dtype", + [ + (1, 1.0, None), + # When float_numpy_dtype=float32, this is not the case + # see the correction below + (1.1, 1.1, np.float64), + (False, False, object), # GH#36319 + ("x", "x", object), + ], + ) + def test_insert_float_index( + self, float_numpy_dtype, insert, coerced_val, coerced_dtype + ): + dtype = float_numpy_dtype + obj = pd.Index([1.0, 2.0, 3.0, 4.0], dtype=dtype) + coerced_dtype = coerced_dtype if coerced_dtype is not None else dtype + + if np_version_gt2 and dtype == "float32" and coerced_val == 1.1: + # Hack, in the 2nd test case, since 1.1 can be losslessly cast to float32 + # the expected dtype will be float32 if the original dtype was float32 + coerced_dtype = np.float32 + exp = pd.Index([1.0, coerced_val, 2.0, 3.0, 4.0], dtype=coerced_dtype) + self._assert_insert_conversion(obj, insert, exp, coerced_dtype) + + @pytest.mark.parametrize( + "fill_val,exp_dtype", + [ + (pd.Timestamp("2012-01-01"), "datetime64[ns]"), + (pd.Timestamp("2012-01-01", tz="US/Eastern"), "datetime64[ns, US/Eastern]"), + ], + ids=["datetime64", "datetime64tz"], + ) + @pytest.mark.parametrize( + "insert_value", + [pd.Timestamp("2012-01-01"), pd.Timestamp("2012-01-01", tz="Asia/Tokyo"), 1], + ) + def test_insert_index_datetimes(self, fill_val, exp_dtype, insert_value): + obj = pd.DatetimeIndex( + ["2011-01-01", "2011-01-02", "2011-01-03", "2011-01-04"], tz=fill_val.tz + ).as_unit("ns") + assert obj.dtype == exp_dtype + + exp = pd.DatetimeIndex( + ["2011-01-01", fill_val.date(), "2011-01-02", "2011-01-03", "2011-01-04"], + tz=fill_val.tz, + ).as_unit("ns") + self._assert_insert_conversion(obj, fill_val, exp, exp_dtype) + + if fill_val.tz: + # mismatched tzawareness + ts = pd.Timestamp("2012-01-01") + result = obj.insert(1, ts) + expected = obj.astype(object).insert(1, ts) + assert expected.dtype == object + tm.assert_index_equal(result, expected) + + ts = pd.Timestamp("2012-01-01", tz="Asia/Tokyo") + result = obj.insert(1, ts) + # once deprecation is enforced: + expected = obj.insert(1, ts.tz_convert(obj.dtype.tz)) + assert expected.dtype == obj.dtype + tm.assert_index_equal(result, expected) + + else: + # mismatched tzawareness + ts = pd.Timestamp("2012-01-01", tz="Asia/Tokyo") + result = obj.insert(1, ts) + expected = obj.astype(object).insert(1, ts) + assert expected.dtype == object + tm.assert_index_equal(result, expected) + + item = 1 + result = obj.insert(1, item) + expected = obj.astype(object).insert(1, item) + assert expected[1] == item + assert expected.dtype == object + tm.assert_index_equal(result, expected) + + def test_insert_index_timedelta64(self): + obj = pd.TimedeltaIndex(["1 day", "2 day", "3 day", "4 day"]) + assert obj.dtype == "timedelta64[ns]" + + # timedelta64 + timedelta64 => timedelta64 + exp = pd.TimedeltaIndex(["1 day", "10 day", "2 day", "3 day", "4 day"]) + self._assert_insert_conversion( + obj, pd.Timedelta("10 day"), exp, "timedelta64[ns]" + ) + + for item in [pd.Timestamp("2012-01-01"), 1]: + result = obj.insert(1, item) + expected = obj.astype(object).insert(1, item) + assert expected.dtype == object + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize( + "insert, coerced_val, coerced_dtype", + [ + (pd.Period("2012-01", freq="M"), "2012-01", "period[M]"), + (pd.Timestamp("2012-01-01"), pd.Timestamp("2012-01-01"), object), + (1, 1, object), + ("x", "x", object), + ], + ) + def test_insert_index_period(self, insert, coerced_val, coerced_dtype): + obj = pd.PeriodIndex(["2011-01", "2011-02", "2011-03", "2011-04"], freq="M") + assert obj.dtype == "period[M]" + + data = [ + pd.Period("2011-01", freq="M"), + coerced_val, + pd.Period("2011-02", freq="M"), + pd.Period("2011-03", freq="M"), + pd.Period("2011-04", freq="M"), + ] + if isinstance(insert, pd.Period): + exp = pd.PeriodIndex(data, freq="M") + self._assert_insert_conversion(obj, insert, exp, coerced_dtype) + + # string that can be parsed to appropriate PeriodDtype + self._assert_insert_conversion(obj, str(insert), exp, coerced_dtype) + + else: + result = obj.insert(0, insert) + expected = obj.astype(object).insert(0, insert) + tm.assert_index_equal(result, expected) + + # TODO: ATM inserting '2012-01-01 00:00:00' when we have obj.freq=="M" + # casts that string to Period[M], not clear that is desirable + if not isinstance(insert, pd.Timestamp): + # non-castable string + result = obj.insert(0, str(insert)) + expected = obj.astype(object).insert(0, str(insert)) + tm.assert_index_equal(result, expected) + + @pytest.mark.xfail(reason="Test not implemented") + def test_insert_index_complex128(self): + raise NotImplementedError + + @pytest.mark.xfail(reason="Test not implemented") + def test_insert_index_bool(self): + raise NotImplementedError + + +class TestWhereCoercion(CoercionBase): + method = "where" + _cond = np.array([True, False, True, False]) + + def _assert_where_conversion( + self, original, cond, values, expected, expected_dtype + ): + """test coercion triggered by where""" + target = original.copy() + res = target.where(cond, values) + tm.assert_equal(res, expected) + assert res.dtype == expected_dtype + + def _construct_exp(self, obj, klass, fill_val, exp_dtype): + if fill_val is True: + values = klass([True, False, True, True]) + elif isinstance(fill_val, (datetime, np.datetime64)): + values = pd.date_range(fill_val, periods=4) + else: + values = klass(x * fill_val for x in [5, 6, 7, 8]) + + exp = klass([obj[0], values[1], obj[2], values[3]], dtype=exp_dtype) + return values, exp + + def _run_test(self, obj, fill_val, klass, exp_dtype): + cond = klass(self._cond) + + exp = klass([obj[0], fill_val, obj[2], fill_val], dtype=exp_dtype) + self._assert_where_conversion(obj, cond, fill_val, exp, exp_dtype) + + values, exp = self._construct_exp(obj, klass, fill_val, exp_dtype) + self._assert_where_conversion(obj, cond, values, exp, exp_dtype) + + @pytest.mark.parametrize( + "fill_val,exp_dtype", + [(1, object), (1.1, object), (1 + 1j, object), (True, object)], + ) + def test_where_object(self, index_or_series, fill_val, exp_dtype): + klass = index_or_series + obj = klass(list("abcd"), dtype=object) + assert obj.dtype == object + self._run_test(obj, fill_val, klass, exp_dtype) + + @pytest.mark.parametrize( + "fill_val,exp_dtype", + [(1, np.int64), (1.1, np.float64), (1 + 1j, np.complex128), (True, object)], + ) + def test_where_int64(self, index_or_series, fill_val, exp_dtype, request): + klass = index_or_series + + obj = klass([1, 2, 3, 4]) + assert obj.dtype == np.int64 + self._run_test(obj, fill_val, klass, exp_dtype) + + @pytest.mark.parametrize( + "fill_val, exp_dtype", + [(1, np.float64), (1.1, np.float64), (1 + 1j, np.complex128), (True, object)], + ) + def test_where_float64(self, index_or_series, fill_val, exp_dtype, request): + klass = index_or_series + + obj = klass([1.1, 2.2, 3.3, 4.4]) + assert obj.dtype == np.float64 + self._run_test(obj, fill_val, klass, exp_dtype) + + @pytest.mark.parametrize( + "fill_val,exp_dtype", + [ + (1, np.complex128), + (1.1, np.complex128), + (1 + 1j, np.complex128), + (True, object), + ], + ) + def test_where_complex128(self, index_or_series, fill_val, exp_dtype): + klass = index_or_series + obj = klass([1 + 1j, 2 + 2j, 3 + 3j, 4 + 4j], dtype=np.complex128) + assert obj.dtype == np.complex128 + self._run_test(obj, fill_val, klass, exp_dtype) + + @pytest.mark.parametrize( + "fill_val,exp_dtype", + [(1, object), (1.1, object), (1 + 1j, object), (True, np.bool_)], + ) + def test_where_series_bool(self, index_or_series, fill_val, exp_dtype): + klass = index_or_series + + obj = klass([True, False, True, False]) + assert obj.dtype == np.bool_ + self._run_test(obj, fill_val, klass, exp_dtype) + + @pytest.mark.parametrize( + "fill_val,exp_dtype", + [ + (pd.Timestamp("2012-01-01"), "datetime64[ns]"), + (pd.Timestamp("2012-01-01", tz="US/Eastern"), object), + ], + ids=["datetime64", "datetime64tz"], + ) + def test_where_datetime64(self, index_or_series, fill_val, exp_dtype): + klass = index_or_series + + obj = klass(pd.date_range("2011-01-01", periods=4, freq="D")._with_freq(None)) + assert obj.dtype == "datetime64[ns]" + + fv = fill_val + # do the check with each of the available datetime scalars + if exp_dtype == "datetime64[ns]": + for scalar in [fv, fv.to_pydatetime(), fv.to_datetime64()]: + self._run_test(obj, scalar, klass, exp_dtype) + else: + for scalar in [fv, fv.to_pydatetime()]: + self._run_test(obj, fill_val, klass, exp_dtype) + + @pytest.mark.xfail(reason="Test not implemented") + def test_where_index_complex128(self): + raise NotImplementedError + + @pytest.mark.xfail(reason="Test not implemented") + def test_where_index_bool(self): + raise NotImplementedError + + @pytest.mark.xfail(reason="Test not implemented") + def test_where_series_timedelta64(self): + raise NotImplementedError + + @pytest.mark.xfail(reason="Test not implemented") + def test_where_series_period(self): + raise NotImplementedError + + @pytest.mark.parametrize( + "value", [pd.Timedelta(days=9), timedelta(days=9), np.timedelta64(9, "D")] + ) + def test_where_index_timedelta64(self, value): + tdi = pd.timedelta_range("1 Day", periods=4) + cond = np.array([True, False, False, True]) + + expected = pd.TimedeltaIndex(["1 Day", value, value, "4 Days"]) + result = tdi.where(cond, value) + tm.assert_index_equal(result, expected) + + # wrong-dtyped NaT + dtnat = np.datetime64("NaT", "ns") + expected = pd.Index([tdi[0], dtnat, dtnat, tdi[3]], dtype=object) + assert expected[1] is dtnat + + result = tdi.where(cond, dtnat) + tm.assert_index_equal(result, expected) + + def test_where_index_period(self): + dti = pd.date_range("2016-01-01", periods=3, freq="QS") + pi = dti.to_period("Q") + + cond = np.array([False, True, False]) + + # Passing a valid scalar + value = pi[-1] + pi.freq * 10 + expected = pd.PeriodIndex([value, pi[1], value]) + result = pi.where(cond, value) + tm.assert_index_equal(result, expected) + + # Case passing ndarray[object] of Periods + other = np.asarray(pi + pi.freq * 10, dtype=object) + result = pi.where(cond, other) + expected = pd.PeriodIndex([other[0], pi[1], other[2]]) + tm.assert_index_equal(result, expected) + + # Passing a mismatched scalar -> casts to object + td = pd.Timedelta(days=4) + expected = pd.Index([td, pi[1], td], dtype=object) + result = pi.where(cond, td) + tm.assert_index_equal(result, expected) + + per = pd.Period("2020-04-21", "D") + expected = pd.Index([per, pi[1], per], dtype=object) + result = pi.where(cond, per) + tm.assert_index_equal(result, expected) + + +class TestFillnaSeriesCoercion(CoercionBase): + # not indexing, but place here for consistency + + method = "fillna" + + @pytest.mark.xfail(reason="Test not implemented") + def test_has_comprehensive_tests(self): + raise NotImplementedError + + def _assert_fillna_conversion(self, original, value, expected, expected_dtype): + """test coercion triggered by fillna""" + target = original.copy() + res = target.fillna(value) + tm.assert_equal(res, expected) + assert res.dtype == expected_dtype + + @pytest.mark.parametrize( + "fill_val, fill_dtype", + [(1, object), (1.1, object), (1 + 1j, object), (True, object)], + ) + def test_fillna_object(self, index_or_series, fill_val, fill_dtype): + klass = index_or_series + obj = klass(["a", np.nan, "c", "d"], dtype=object) + assert obj.dtype == object + + exp = klass(["a", fill_val, "c", "d"], dtype=object) + self._assert_fillna_conversion(obj, fill_val, exp, fill_dtype) + + @pytest.mark.parametrize( + "fill_val,fill_dtype", + [(1, np.float64), (1.1, np.float64), (1 + 1j, np.complex128), (True, object)], + ) + def test_fillna_float64(self, index_or_series, fill_val, fill_dtype): + klass = index_or_series + obj = klass([1.1, np.nan, 3.3, 4.4]) + assert obj.dtype == np.float64 + + exp = klass([1.1, fill_val, 3.3, 4.4]) + self._assert_fillna_conversion(obj, fill_val, exp, fill_dtype) + + @pytest.mark.parametrize( + "fill_val,fill_dtype", + [ + (1, np.complex128), + (1.1, np.complex128), + (1 + 1j, np.complex128), + (True, object), + ], + ) + def test_fillna_complex128(self, index_or_series, fill_val, fill_dtype): + klass = index_or_series + obj = klass([1 + 1j, np.nan, 3 + 3j, 4 + 4j], dtype=np.complex128) + assert obj.dtype == np.complex128 + + exp = klass([1 + 1j, fill_val, 3 + 3j, 4 + 4j]) + self._assert_fillna_conversion(obj, fill_val, exp, fill_dtype) + + @pytest.mark.parametrize( + "fill_val,fill_dtype", + [ + (pd.Timestamp("2012-01-01"), "datetime64[ns]"), + (pd.Timestamp("2012-01-01", tz="US/Eastern"), object), + (1, object), + ("x", object), + ], + ids=["datetime64", "datetime64tz", "object", "object"], + ) + def test_fillna_datetime(self, index_or_series, fill_val, fill_dtype): + klass = index_or_series + obj = klass( + [ + pd.Timestamp("2011-01-01"), + pd.NaT, + pd.Timestamp("2011-01-03"), + pd.Timestamp("2011-01-04"), + ] + ) + assert obj.dtype == "datetime64[ns]" + + exp = klass( + [ + pd.Timestamp("2011-01-01"), + fill_val, + pd.Timestamp("2011-01-03"), + pd.Timestamp("2011-01-04"), + ] + ) + self._assert_fillna_conversion(obj, fill_val, exp, fill_dtype) + + @pytest.mark.parametrize( + "fill_val,fill_dtype", + [ + (pd.Timestamp("2012-01-01", tz="US/Eastern"), "datetime64[ns, US/Eastern]"), + (pd.Timestamp("2012-01-01"), object), + # pre-2.0 with a mismatched tz we would get object result + (pd.Timestamp("2012-01-01", tz="Asia/Tokyo"), "datetime64[ns, US/Eastern]"), + (1, object), + ("x", object), + ], + ) + def test_fillna_datetime64tz(self, index_or_series, fill_val, fill_dtype): + klass = index_or_series + tz = "US/Eastern" + + obj = klass( + [ + pd.Timestamp("2011-01-01", tz=tz), + pd.NaT, + pd.Timestamp("2011-01-03", tz=tz), + pd.Timestamp("2011-01-04", tz=tz), + ] + ) + assert obj.dtype == "datetime64[ns, US/Eastern]" + + if getattr(fill_val, "tz", None) is None: + fv = fill_val + else: + fv = fill_val.tz_convert(tz) + exp = klass( + [ + pd.Timestamp("2011-01-01", tz=tz), + fv, + pd.Timestamp("2011-01-03", tz=tz), + pd.Timestamp("2011-01-04", tz=tz), + ] + ) + self._assert_fillna_conversion(obj, fill_val, exp, fill_dtype) + + @pytest.mark.parametrize( + "fill_val", + [ + 1, + 1.1, + 1 + 1j, + True, + pd.Interval(1, 2, closed="left"), + pd.Timestamp("2012-01-01", tz="US/Eastern"), + pd.Timestamp("2012-01-01"), + pd.Timedelta(days=1), + pd.Period("2016-01-01", "D"), + ], + ) + def test_fillna_interval(self, index_or_series, fill_val): + ii = pd.interval_range(1.0, 5.0, closed="right").insert(1, np.nan) + assert isinstance(ii.dtype, pd.IntervalDtype) + obj = index_or_series(ii) + + exp = index_or_series([ii[0], fill_val, ii[2], ii[3], ii[4]], dtype=object) + + fill_dtype = object + self._assert_fillna_conversion(obj, fill_val, exp, fill_dtype) + + @pytest.mark.xfail(reason="Test not implemented") + def test_fillna_series_int64(self): + raise NotImplementedError + + @pytest.mark.xfail(reason="Test not implemented") + def test_fillna_index_int64(self): + raise NotImplementedError + + @pytest.mark.xfail(reason="Test not implemented") + def test_fillna_series_bool(self): + raise NotImplementedError + + @pytest.mark.xfail(reason="Test not implemented") + def test_fillna_index_bool(self): + raise NotImplementedError + + @pytest.mark.xfail(reason="Test not implemented") + def test_fillna_series_timedelta64(self): + raise NotImplementedError + + @pytest.mark.parametrize( + "fill_val", + [ + 1, + 1.1, + 1 + 1j, + True, + pd.Interval(1, 2, closed="left"), + pd.Timestamp("2012-01-01", tz="US/Eastern"), + pd.Timestamp("2012-01-01"), + pd.Timedelta(days=1), + pd.Period("2016-01-01", "W"), + ], + ) + def test_fillna_series_period(self, index_or_series, fill_val): + pi = pd.period_range("2016-01-01", periods=4, freq="D").insert(1, pd.NaT) + assert isinstance(pi.dtype, pd.PeriodDtype) + obj = index_or_series(pi) + + exp = index_or_series([pi[0], fill_val, pi[2], pi[3], pi[4]], dtype=object) + + fill_dtype = object + self._assert_fillna_conversion(obj, fill_val, exp, fill_dtype) + + @pytest.mark.xfail(reason="Test not implemented") + def test_fillna_index_timedelta64(self): + raise NotImplementedError + + @pytest.mark.xfail(reason="Test not implemented") + def test_fillna_index_period(self): + raise NotImplementedError + + +class TestReplaceSeriesCoercion(CoercionBase): + klasses = ["series"] + method = "replace" + + rep: dict[str, list] = {} + rep["object"] = ["a", "b"] + rep["int64"] = [4, 5] + rep["float64"] = [1.1, 2.2] + rep["complex128"] = [1 + 1j, 2 + 2j] + rep["bool"] = [True, False] + rep["datetime64[ns]"] = [pd.Timestamp("2011-01-01"), pd.Timestamp("2011-01-03")] + + for tz in ["UTC", "US/Eastern"]: + # to test tz => different tz replacement + key = f"datetime64[ns, {tz}]" + rep[key] = [ + pd.Timestamp("2011-01-01", tz=tz), + pd.Timestamp("2011-01-03", tz=tz), + ] + + rep["timedelta64[ns]"] = [pd.Timedelta("1 day"), pd.Timedelta("2 day")] + + @pytest.fixture(params=["dict", "series"]) + def how(self, request): + return request.param + + @pytest.fixture( + params=[ + "object", + "int64", + "float64", + "complex128", + "bool", + "datetime64[ns]", + "datetime64[ns, UTC]", + "datetime64[ns, US/Eastern]", + "timedelta64[ns]", + ] + ) + def from_key(self, request): + return request.param + + @pytest.fixture( + params=[ + "object", + "int64", + "float64", + "complex128", + "bool", + "datetime64[ns]", + "datetime64[ns, UTC]", + "datetime64[ns, US/Eastern]", + "timedelta64[ns]", + ], + ids=[ + "object", + "int64", + "float64", + "complex128", + "bool", + "datetime64", + "datetime64tz", + "datetime64tz", + "timedelta64", + ], + ) + def to_key(self, request): + return request.param + + @pytest.fixture + def replacer(self, how, from_key, to_key): + """ + Object we will pass to `Series.replace` + """ + if how == "dict": + replacer = dict(zip(self.rep[from_key], self.rep[to_key])) + elif how == "series": + replacer = pd.Series(self.rep[to_key], index=self.rep[from_key]) + else: + raise ValueError + return replacer + + def test_replace_series(self, how, to_key, from_key, replacer, using_infer_string): + index = pd.Index([3, 4], name="xxx") + obj = pd.Series(self.rep[from_key], index=index, name="yyy") + obj = obj.astype(from_key) + assert obj.dtype == from_key + + if from_key.startswith("datetime") and to_key.startswith("datetime"): + # tested below + return + elif from_key in ["datetime64[ns, US/Eastern]", "datetime64[ns, UTC]"]: + # tested below + return + + if (from_key == "float64" and to_key in ("int64")) or ( + from_key == "complex128" and to_key in ("int64", "float64") + ): + if not IS64 or is_platform_windows(): + pytest.skip(f"32-bit platform buggy: {from_key} -> {to_key}") + + # Expected: do not downcast by replacement + exp = pd.Series(self.rep[to_key], index=index, name="yyy", dtype=from_key) + + else: + exp = pd.Series(self.rep[to_key], index=index, name="yyy") + + if using_infer_string and exp.dtype == "string": + # with infer_string, we disable the deprecated downcasting behavior + exp = exp.astype(object) + + msg = "Downcasting behavior in `replace`" + warn = FutureWarning + if ( + exp.dtype == obj.dtype + or exp.dtype == object + or (exp.dtype.kind in "iufc" and obj.dtype.kind in "iufc") + ): + warn = None + with tm.assert_produces_warning(warn, match=msg): + result = obj.replace(replacer) + + tm.assert_series_equal(result, exp) + + @pytest.mark.parametrize( + "to_key", + ["timedelta64[ns]", "bool", "object", "complex128", "float64", "int64"], + indirect=True, + ) + @pytest.mark.parametrize( + "from_key", ["datetime64[ns, UTC]", "datetime64[ns, US/Eastern]"], indirect=True + ) + def test_replace_series_datetime_tz( + self, how, to_key, from_key, replacer, using_infer_string + ): + index = pd.Index([3, 4], name="xyz") + obj = pd.Series(self.rep[from_key], index=index, name="yyy") + assert obj.dtype == from_key + + exp = pd.Series(self.rep[to_key], index=index, name="yyy") + if using_infer_string and exp.dtype == "string": + # with infer_string, we disable the deprecated downcasting behavior + exp = exp.astype(object) + else: + assert exp.dtype == to_key + + msg = "Downcasting behavior in `replace`" + warn = FutureWarning if exp.dtype != object else None + with tm.assert_produces_warning(warn, match=msg): + result = obj.replace(replacer) + + tm.assert_series_equal(result, exp) + + @pytest.mark.parametrize( + "to_key", + ["datetime64[ns]", "datetime64[ns, UTC]", "datetime64[ns, US/Eastern]"], + indirect=True, + ) + @pytest.mark.parametrize( + "from_key", + ["datetime64[ns]", "datetime64[ns, UTC]", "datetime64[ns, US/Eastern]"], + indirect=True, + ) + def test_replace_series_datetime_datetime(self, how, to_key, from_key, replacer): + index = pd.Index([3, 4], name="xyz") + obj = pd.Series(self.rep[from_key], index=index, name="yyy") + assert obj.dtype == from_key + + exp = pd.Series(self.rep[to_key], index=index, name="yyy") + warn = FutureWarning + if isinstance(obj.dtype, pd.DatetimeTZDtype) and isinstance( + exp.dtype, pd.DatetimeTZDtype + ): + # with mismatched tzs, we retain the original dtype as of 2.0 + exp = exp.astype(obj.dtype) + warn = None + else: + assert exp.dtype == to_key + if to_key == from_key: + warn = None + + msg = "Downcasting behavior in `replace`" + with tm.assert_produces_warning(warn, match=msg): + result = obj.replace(replacer) + + tm.assert_series_equal(result, exp) + + @pytest.mark.xfail(reason="Test not implemented") + def test_replace_series_period(self): + raise NotImplementedError diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_datetime.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_datetime.py new file mode 100644 index 0000000000000000000000000000000000000000..af7533399ea74afb5a5d2b14d2d37d2194926114 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_datetime.py @@ -0,0 +1,191 @@ +import re + +import pytest + +import pandas as pd +from pandas import ( + DataFrame, + Index, + Series, + Timestamp, + date_range, +) +import pandas._testing as tm + + +class TestDatetimeIndex: + def test_get_loc_naive_dti_aware_str_deprecated(self): + # GH#46903 + ts = Timestamp("20130101")._value + dti = pd.DatetimeIndex([ts + 50 + i for i in range(100)]) + ser = Series(range(100), index=dti) + + key = "2013-01-01 00:00:00.000000050+0000" + msg = re.escape(repr(key)) + with pytest.raises(KeyError, match=msg): + ser[key] + + with pytest.raises(KeyError, match=msg): + dti.get_loc(key) + + def test_indexing_with_datetime_tz(self): + # GH#8260 + # support datetime64 with tz + + idx = Index(date_range("20130101", periods=3, tz="US/Eastern"), name="foo") + dr = date_range("20130110", periods=3) + df = DataFrame({"A": idx, "B": dr}) + df["C"] = idx + df.iloc[1, 1] = pd.NaT + df.iloc[1, 2] = pd.NaT + + expected = Series( + [Timestamp("2013-01-02 00:00:00-0500", tz="US/Eastern"), pd.NaT, pd.NaT], + index=list("ABC"), + dtype="object", + name=1, + ) + + # indexing + result = df.iloc[1] + tm.assert_series_equal(result, expected) + result = df.loc[1] + tm.assert_series_equal(result, expected) + + def test_indexing_fast_xs(self): + # indexing - fast_xs + df = DataFrame({"a": date_range("2014-01-01", periods=10, tz="UTC")}) + result = df.iloc[5] + expected = Series( + [Timestamp("2014-01-06 00:00:00+0000", tz="UTC")], + index=["a"], + name=5, + dtype="M8[ns, UTC]", + ) + tm.assert_series_equal(result, expected) + + result = df.loc[5] + tm.assert_series_equal(result, expected) + + # indexing - boolean + result = df[df.a > df.a[3]] + expected = df.iloc[4:] + tm.assert_frame_equal(result, expected) + + def test_consistency_with_tz_aware_scalar(self): + # xef gh-12938 + # various ways of indexing the same tz-aware scalar + df = Series([Timestamp("2016-03-30 14:35:25", tz="Europe/Brussels")]).to_frame() + + df = pd.concat([df, df]).reset_index(drop=True) + expected = Timestamp("2016-03-30 14:35:25+0200", tz="Europe/Brussels") + + result = df[0][0] + assert result == expected + + result = df.iloc[0, 0] + assert result == expected + + result = df.loc[0, 0] + assert result == expected + + result = df.iat[0, 0] + assert result == expected + + result = df.at[0, 0] + assert result == expected + + result = df[0].loc[0] + assert result == expected + + result = df[0].at[0] + assert result == expected + + def test_indexing_with_datetimeindex_tz(self, indexer_sl): + # GH 12050 + # indexing on a series with a datetimeindex with tz + index = date_range("2015-01-01", periods=2, tz="utc") + + ser = Series(range(2), index=index, dtype="int64") + + # list-like indexing + + for sel in (index, list(index)): + # getitem + result = indexer_sl(ser)[sel] + expected = ser.copy() + if sel is not index: + expected.index = expected.index._with_freq(None) + tm.assert_series_equal(result, expected) + + # setitem + result = ser.copy() + indexer_sl(result)[sel] = 1 + expected = Series(1, index=index) + tm.assert_series_equal(result, expected) + + # single element indexing + + # getitem + assert indexer_sl(ser)[index[1]] == 1 + + # setitem + result = ser.copy() + indexer_sl(result)[index[1]] = 5 + expected = Series([0, 5], index=index) + tm.assert_series_equal(result, expected) + + def test_nanosecond_getitem_setitem_with_tz(self): + # GH 11679 + data = ["2016-06-28 08:30:00.123456789"] + index = pd.DatetimeIndex(data, dtype="datetime64[ns, America/Chicago]") + df = DataFrame({"a": [10]}, index=index) + result = df.loc[df.index[0]] + expected = Series(10, index=["a"], name=df.index[0]) + tm.assert_series_equal(result, expected) + + result = df.copy() + result.loc[df.index[0], "a"] = -1 + expected = DataFrame(-1, index=index, columns=["a"]) + tm.assert_frame_equal(result, expected) + + def test_getitem_str_slice_millisecond_resolution(self, frame_or_series): + # GH#33589 + + keys = [ + "2017-10-25T16:25:04.151", + "2017-10-25T16:25:04.252", + "2017-10-25T16:50:05.237", + "2017-10-25T16:50:05.238", + ] + obj = frame_or_series( + [1, 2, 3, 4], + index=[Timestamp(x) for x in keys], + ) + result = obj[keys[1] : keys[2]] + expected = frame_or_series( + [2, 3], + index=[ + Timestamp(keys[1]), + Timestamp(keys[2]), + ], + ) + tm.assert_equal(result, expected) + + def test_getitem_pyarrow_index(self, frame_or_series): + # GH 53644 + pytest.importorskip("pyarrow") + obj = frame_or_series( + range(5), + index=date_range("2020", freq="D", periods=5).astype( + "timestamp[us][pyarrow]" + ), + ) + result = obj.loc[obj.index[:-3]] + expected = frame_or_series( + range(2), + index=date_range("2020", freq="D", periods=2).astype( + "timestamp[us][pyarrow]" + ), + ) + tm.assert_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_floats.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_floats.py new file mode 100644 index 0000000000000000000000000000000000000000..1fe431e12f2a18207c8d8714abc15ef5495f89bb --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_floats.py @@ -0,0 +1,689 @@ +import numpy as np +import pytest + +from pandas import ( + DataFrame, + Index, + RangeIndex, + Series, + date_range, + period_range, + timedelta_range, +) +import pandas._testing as tm + + +def gen_obj(klass, index): + if klass is Series: + obj = Series(np.arange(len(index)), index=index) + else: + obj = DataFrame( + np.random.default_rng(2).standard_normal((len(index), len(index))), + index=index, + columns=index, + ) + return obj + + +class TestFloatIndexers: + def check(self, result, original, indexer, getitem): + """ + comparator for results + we need to take care if we are indexing on a + Series or a frame + """ + if isinstance(original, Series): + expected = original.iloc[indexer] + elif getitem: + expected = original.iloc[:, indexer] + else: + expected = original.iloc[indexer] + + tm.assert_almost_equal(result, expected) + + @pytest.mark.parametrize( + "index", + [ + Index(list("abcde")), + Index(list("abcde"), dtype="category"), + date_range("2020-01-01", periods=5), + timedelta_range("1 day", periods=5), + period_range("2020-01-01", periods=5), + ], + ) + def test_scalar_non_numeric(self, index, frame_or_series, indexer_sl): + # GH 4892 + # float_indexers should raise exceptions + # on appropriate Index types & accessors + + s = gen_obj(frame_or_series, index) + + # getting + with pytest.raises(KeyError, match="^3.0$"): + indexer_sl(s)[3.0] + + # contains + assert 3.0 not in s + + s2 = s.copy() + indexer_sl(s2)[3.0] = 10 + + if indexer_sl is tm.setitem: + assert 3.0 in s2.axes[-1] + elif indexer_sl is tm.loc: + assert 3.0 in s2.axes[0] + else: + assert 3.0 not in s2.axes[0] + assert 3.0 not in s2.axes[-1] + + @pytest.mark.parametrize( + "index", + [ + Index(list("abcde")), + Index(list("abcde"), dtype="category"), + date_range("2020-01-01", periods=5), + timedelta_range("1 day", periods=5), + period_range("2020-01-01", periods=5), + ], + ) + def test_scalar_non_numeric_series_fallback(self, index): + # fallsback to position selection, series only + s = Series(np.arange(len(index)), index=index) + + msg = "Series.__getitem__ treating keys as positions is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + s[3] + with pytest.raises(KeyError, match="^3.0$"): + s[3.0] + + def test_scalar_with_mixed(self, indexer_sl): + s2 = Series([1, 2, 3], index=["a", "b", "c"]) + s3 = Series([1, 2, 3], index=["a", "b", 1.5]) + + # lookup in a pure string index with an invalid indexer + + with pytest.raises(KeyError, match="^1.0$"): + indexer_sl(s2)[1.0] + + with pytest.raises(KeyError, match=r"^1\.0$"): + indexer_sl(s2)[1.0] + + result = indexer_sl(s2)["b"] + expected = 2 + assert result == expected + + # mixed index so we have label + # indexing + with pytest.raises(KeyError, match="^1.0$"): + indexer_sl(s3)[1.0] + + if indexer_sl is not tm.loc: + # __getitem__ falls back to positional + msg = "Series.__getitem__ treating keys as positions is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + result = s3[1] + expected = 2 + assert result == expected + + with pytest.raises(KeyError, match=r"^1\.0$"): + indexer_sl(s3)[1.0] + + result = indexer_sl(s3)[1.5] + expected = 3 + assert result == expected + + @pytest.mark.parametrize( + "index", [Index(np.arange(5), dtype=np.int64), RangeIndex(5)] + ) + def test_scalar_integer(self, index, frame_or_series, indexer_sl): + getitem = indexer_sl is not tm.loc + + # test how scalar float indexers work on int indexes + + # integer index + i = index + obj = gen_obj(frame_or_series, i) + + # coerce to equal int + + result = indexer_sl(obj)[3.0] + self.check(result, obj, 3, getitem) + + if isinstance(obj, Series): + + def compare(x, y): + assert x == y + + expected = 100 + else: + compare = tm.assert_series_equal + if getitem: + expected = Series(100, index=range(len(obj)), name=3) + else: + expected = Series(100.0, index=range(len(obj)), name=3) + + s2 = obj.copy() + indexer_sl(s2)[3.0] = 100 + + result = indexer_sl(s2)[3.0] + compare(result, expected) + + result = indexer_sl(s2)[3] + compare(result, expected) + + @pytest.mark.parametrize( + "index", [Index(np.arange(5), dtype=np.int64), RangeIndex(5)] + ) + def test_scalar_integer_contains_float(self, index, frame_or_series): + # contains + # integer index + obj = gen_obj(frame_or_series, index) + + # coerce to equal int + assert 3.0 in obj + + def test_scalar_float(self, frame_or_series): + # scalar float indexers work on a float index + index = Index(np.arange(5.0)) + s = gen_obj(frame_or_series, index) + + # assert all operations except for iloc are ok + indexer = index[3] + for idxr in [tm.loc, tm.setitem]: + getitem = idxr is not tm.loc + + # getting + result = idxr(s)[indexer] + self.check(result, s, 3, getitem) + + # setting + s2 = s.copy() + + result = idxr(s2)[indexer] + self.check(result, s, 3, getitem) + + # random float is a KeyError + with pytest.raises(KeyError, match=r"^3\.5$"): + idxr(s)[3.5] + + # contains + assert 3.0 in s + + # iloc succeeds with an integer + expected = s.iloc[3] + s2 = s.copy() + + s2.iloc[3] = expected + result = s2.iloc[3] + self.check(result, s, 3, False) + + @pytest.mark.parametrize( + "index", + [ + Index(list("abcde"), dtype=object), + date_range("2020-01-01", periods=5), + timedelta_range("1 day", periods=5), + period_range("2020-01-01", periods=5), + ], + ) + @pytest.mark.parametrize("idx", [slice(3.0, 4), slice(3, 4.0), slice(3.0, 4.0)]) + def test_slice_non_numeric(self, index, idx, frame_or_series, indexer_sli): + # GH 4892 + # float_indexers should raise exceptions + # on appropriate Index types & accessors + + s = gen_obj(frame_or_series, index) + + # getitem + if indexer_sli is tm.iloc: + msg = ( + "cannot do positional indexing " + rf"on {type(index).__name__} with these indexers \[(3|4)\.0\] of " + "type float" + ) + else: + msg = ( + "cannot do slice indexing " + rf"on {type(index).__name__} with these indexers " + r"\[(3|4)(\.0)?\] " + r"of type (float|int)" + ) + with pytest.raises(TypeError, match=msg): + indexer_sli(s)[idx] + + # setitem + if indexer_sli is tm.iloc: + # otherwise we keep the same message as above + msg = "slice indices must be integers or None or have an __index__ method" + with pytest.raises(TypeError, match=msg): + indexer_sli(s)[idx] = 0 + + def test_slice_integer(self): + # same as above, but for Integer based indexes + # these coerce to a like integer + # oob indicates if we are out of bounds + # of positional indexing + for index, oob in [ + (Index(np.arange(5, dtype=np.int64)), False), + (RangeIndex(5), False), + (Index(np.arange(5, dtype=np.int64) + 10), True), + ]: + # s is an in-range index + s = Series(range(5), index=index) + + # getitem + for idx in [slice(3.0, 4), slice(3, 4.0), slice(3.0, 4.0)]: + result = s.loc[idx] + + # these are all label indexing + # except getitem which is positional + # empty + if oob: + indexer = slice(0, 0) + else: + indexer = slice(3, 5) + self.check(result, s, indexer, False) + + # getitem out-of-bounds + for idx in [slice(-6, 6), slice(-6.0, 6.0)]: + result = s.loc[idx] + + # these are all label indexing + # except getitem which is positional + # empty + if oob: + indexer = slice(0, 0) + else: + indexer = slice(-6, 6) + self.check(result, s, indexer, False) + + # positional indexing + msg = ( + "cannot do slice indexing " + rf"on {type(index).__name__} with these indexers \[-6\.0\] of " + "type float" + ) + with pytest.raises(TypeError, match=msg): + s[slice(-6.0, 6.0)] + + # getitem odd floats + for idx, res1 in [ + (slice(2.5, 4), slice(3, 5)), + (slice(2, 3.5), slice(2, 4)), + (slice(2.5, 3.5), slice(3, 4)), + ]: + result = s.loc[idx] + if oob: + res = slice(0, 0) + else: + res = res1 + + self.check(result, s, res, False) + + # positional indexing + msg = ( + "cannot do slice indexing " + rf"on {type(index).__name__} with these indexers \[(2|3)\.5\] of " + "type float" + ) + with pytest.raises(TypeError, match=msg): + s[idx] + + @pytest.mark.parametrize("idx", [slice(2, 4.0), slice(2.0, 4), slice(2.0, 4.0)]) + def test_integer_positional_indexing(self, idx): + """make sure that we are raising on positional indexing + w.r.t. an integer index + """ + s = Series(range(2, 6), index=range(2, 6)) + + result = s[2:4] + expected = s.iloc[2:4] + tm.assert_series_equal(result, expected) + + klass = RangeIndex + msg = ( + "cannot do (slice|positional) indexing " + rf"on {klass.__name__} with these indexers \[(2|4)\.0\] of " + "type float" + ) + with pytest.raises(TypeError, match=msg): + s[idx] + with pytest.raises(TypeError, match=msg): + s.iloc[idx] + + @pytest.mark.parametrize( + "index", [Index(np.arange(5), dtype=np.int64), RangeIndex(5)] + ) + def test_slice_integer_frame_getitem(self, index): + # similar to above, but on the getitem dim (of a DataFrame) + s = DataFrame(np.random.default_rng(2).standard_normal((5, 2)), index=index) + + # getitem + for idx in [slice(0.0, 1), slice(0, 1.0), slice(0.0, 1.0)]: + result = s.loc[idx] + indexer = slice(0, 2) + self.check(result, s, indexer, False) + + # positional indexing + msg = ( + "cannot do slice indexing " + rf"on {type(index).__name__} with these indexers \[(0|1)\.0\] of " + "type float" + ) + with pytest.raises(TypeError, match=msg): + s[idx] + + # getitem out-of-bounds + for idx in [slice(-10, 10), slice(-10.0, 10.0)]: + result = s.loc[idx] + self.check(result, s, slice(-10, 10), True) + + # positional indexing + msg = ( + "cannot do slice indexing " + rf"on {type(index).__name__} with these indexers \[-10\.0\] of " + "type float" + ) + with pytest.raises(TypeError, match=msg): + s[slice(-10.0, 10.0)] + + # getitem odd floats + for idx, res in [ + (slice(0.5, 1), slice(1, 2)), + (slice(0, 0.5), slice(0, 1)), + (slice(0.5, 1.5), slice(1, 2)), + ]: + result = s.loc[idx] + self.check(result, s, res, False) + + # positional indexing + msg = ( + "cannot do slice indexing " + rf"on {type(index).__name__} with these indexers \[0\.5\] of " + "type float" + ) + with pytest.raises(TypeError, match=msg): + s[idx] + + @pytest.mark.parametrize("idx", [slice(3.0, 4), slice(3, 4.0), slice(3.0, 4.0)]) + @pytest.mark.parametrize( + "index", [Index(np.arange(5), dtype=np.int64), RangeIndex(5)] + ) + def test_float_slice_getitem_with_integer_index_raises(self, idx, index): + # similar to above, but on the getitem dim (of a DataFrame) + s = DataFrame(np.random.default_rng(2).standard_normal((5, 2)), index=index) + + # setitem + sc = s.copy() + sc.loc[idx] = 0 + result = sc.loc[idx].values.ravel() + assert (result == 0).all() + + # positional indexing + msg = ( + "cannot do slice indexing " + rf"on {type(index).__name__} with these indexers \[(3|4)\.0\] of " + "type float" + ) + with pytest.raises(TypeError, match=msg): + s[idx] = 0 + + with pytest.raises(TypeError, match=msg): + s[idx] + + @pytest.mark.parametrize("idx", [slice(3.0, 4), slice(3, 4.0), slice(3.0, 4.0)]) + def test_slice_float(self, idx, frame_or_series, indexer_sl): + # same as above, but for floats + index = Index(np.arange(5.0)) + 0.1 + s = gen_obj(frame_or_series, index) + + expected = s.iloc[3:4] + + # getitem + result = indexer_sl(s)[idx] + assert isinstance(result, type(s)) + tm.assert_equal(result, expected) + + # setitem + s2 = s.copy() + indexer_sl(s2)[idx] = 0 + result = indexer_sl(s2)[idx].values.ravel() + assert (result == 0).all() + + def test_floating_index_doc_example(self): + index = Index([1.5, 2, 3, 4.5, 5]) + s = Series(range(5), index=index) + assert s[3] == 2 + assert s.loc[3] == 2 + assert s.iloc[3] == 3 + + def test_floating_misc(self, indexer_sl): + # related 236 + # scalar/slicing of a float index + s = Series(np.arange(5), index=np.arange(5) * 2.5, dtype=np.int64) + + # label based slicing + result = indexer_sl(s)[1.0:3.0] + expected = Series(1, index=[2.5]) + tm.assert_series_equal(result, expected) + + # exact indexing when found + + result = indexer_sl(s)[5.0] + assert result == 2 + + result = indexer_sl(s)[5] + assert result == 2 + + # value not found (and no fallbacking at all) + + # scalar integers + with pytest.raises(KeyError, match=r"^4$"): + indexer_sl(s)[4] + + # fancy floats/integers create the correct entry (as nan) + # fancy tests + expected = Series([2, 0], index=Index([5.0, 0.0], dtype=np.float64)) + for fancy_idx in [[5.0, 0.0], np.array([5.0, 0.0])]: # float + tm.assert_series_equal(indexer_sl(s)[fancy_idx], expected) + + expected = Series([2, 0], index=Index([5, 0], dtype="float64")) + for fancy_idx in [[5, 0], np.array([5, 0])]: + tm.assert_series_equal(indexer_sl(s)[fancy_idx], expected) + + warn = FutureWarning if indexer_sl is tm.setitem else None + msg = r"The behavior of obj\[i:j\] with a float-dtype index" + + # all should return the same as we are slicing 'the same' + with tm.assert_produces_warning(warn, match=msg): + result1 = indexer_sl(s)[2:5] + result2 = indexer_sl(s)[2.0:5.0] + result3 = indexer_sl(s)[2.0:5] + result4 = indexer_sl(s)[2.1:5] + tm.assert_series_equal(result1, result2) + tm.assert_series_equal(result1, result3) + tm.assert_series_equal(result1, result4) + + expected = Series([1, 2], index=[2.5, 5.0]) + with tm.assert_produces_warning(warn, match=msg): + result = indexer_sl(s)[2:5] + + tm.assert_series_equal(result, expected) + + # list selection + result1 = indexer_sl(s)[[0.0, 5, 10]] + result2 = s.iloc[[0, 2, 4]] + tm.assert_series_equal(result1, result2) + + with pytest.raises(KeyError, match="not in index"): + indexer_sl(s)[[1.6, 5, 10]] + + with pytest.raises(KeyError, match="not in index"): + indexer_sl(s)[[0, 1, 2]] + + result = indexer_sl(s)[[2.5, 5]] + tm.assert_series_equal(result, Series([1, 2], index=[2.5, 5.0])) + + result = indexer_sl(s)[[2.5]] + tm.assert_series_equal(result, Series([1], index=[2.5])) + + def test_floatindex_slicing_bug(self, float_numpy_dtype): + # GH 5557, related to slicing a float index + dtype = float_numpy_dtype + ser = { + 256: 2321.0, + 1: 78.0, + 2: 2716.0, + 3: 0.0, + 4: 369.0, + 5: 0.0, + 6: 269.0, + 7: 0.0, + 8: 0.0, + 9: 0.0, + 10: 3536.0, + 11: 0.0, + 12: 24.0, + 13: 0.0, + 14: 931.0, + 15: 0.0, + 16: 101.0, + 17: 78.0, + 18: 9643.0, + 19: 0.0, + 20: 0.0, + 21: 0.0, + 22: 63761.0, + 23: 0.0, + 24: 446.0, + 25: 0.0, + 26: 34773.0, + 27: 0.0, + 28: 729.0, + 29: 78.0, + 30: 0.0, + 31: 0.0, + 32: 3374.0, + 33: 0.0, + 34: 1391.0, + 35: 0.0, + 36: 361.0, + 37: 0.0, + 38: 61808.0, + 39: 0.0, + 40: 0.0, + 41: 0.0, + 42: 6677.0, + 43: 0.0, + 44: 802.0, + 45: 0.0, + 46: 2691.0, + 47: 0.0, + 48: 3582.0, + 49: 0.0, + 50: 734.0, + 51: 0.0, + 52: 627.0, + 53: 70.0, + 54: 2584.0, + 55: 0.0, + 56: 324.0, + 57: 0.0, + 58: 605.0, + 59: 0.0, + 60: 0.0, + 61: 0.0, + 62: 3989.0, + 63: 10.0, + 64: 42.0, + 65: 0.0, + 66: 904.0, + 67: 0.0, + 68: 88.0, + 69: 70.0, + 70: 8172.0, + 71: 0.0, + 72: 0.0, + 73: 0.0, + 74: 64902.0, + 75: 0.0, + 76: 347.0, + 77: 0.0, + 78: 36605.0, + 79: 0.0, + 80: 379.0, + 81: 70.0, + 82: 0.0, + 83: 0.0, + 84: 3001.0, + 85: 0.0, + 86: 1630.0, + 87: 7.0, + 88: 364.0, + 89: 0.0, + 90: 67404.0, + 91: 9.0, + 92: 0.0, + 93: 0.0, + 94: 7685.0, + 95: 0.0, + 96: 1017.0, + 97: 0.0, + 98: 2831.0, + 99: 0.0, + 100: 2963.0, + 101: 0.0, + 102: 854.0, + 103: 0.0, + 104: 0.0, + 105: 0.0, + 106: 0.0, + 107: 0.0, + 108: 0.0, + 109: 0.0, + 110: 0.0, + 111: 0.0, + 112: 0.0, + 113: 0.0, + 114: 0.0, + 115: 0.0, + 116: 0.0, + 117: 0.0, + 118: 0.0, + 119: 0.0, + 120: 0.0, + 121: 0.0, + 122: 0.0, + 123: 0.0, + 124: 0.0, + 125: 0.0, + 126: 67744.0, + 127: 22.0, + 128: 264.0, + 129: 0.0, + 260: 197.0, + 268: 0.0, + 265: 0.0, + 269: 0.0, + 261: 0.0, + 266: 1198.0, + 267: 0.0, + 262: 2629.0, + 258: 775.0, + 257: 0.0, + 263: 0.0, + 259: 0.0, + 264: 163.0, + 250: 10326.0, + 251: 0.0, + 252: 1228.0, + 253: 0.0, + 254: 2769.0, + 255: 0.0, + } + + # smoke test for the repr + s = Series(ser, dtype=dtype) + result = s.value_counts() + assert result.index.dtype == dtype + str(result) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_iat.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_iat.py new file mode 100644 index 0000000000000000000000000000000000000000..5b8c4f2d4b9b97228eb768797b224cedffb239a8 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_iat.py @@ -0,0 +1,53 @@ +import numpy as np + +from pandas import ( + DataFrame, + Series, + period_range, +) +import pandas._testing as tm + + +def test_iat(float_frame): + for i, row in enumerate(float_frame.index): + for j, col in enumerate(float_frame.columns): + result = float_frame.iat[i, j] + expected = float_frame.at[row, col] + assert result == expected + + +def test_iat_duplicate_columns(): + # https://github.com/pandas-dev/pandas/issues/11754 + df = DataFrame([[1, 2]], columns=["x", "x"]) + assert df.iat[0, 0] == 1 + + +def test_iat_getitem_series_with_period_index(): + # GH#4390, iat incorrectly indexing + index = period_range("1/1/2001", periods=10) + ser = Series(np.random.default_rng(2).standard_normal(10), index=index) + expected = ser[index[0]] + result = ser.iat[0] + assert expected == result + + +def test_iat_setitem_item_cache_cleared( + indexer_ial, using_copy_on_write, warn_copy_on_write +): + # GH#45684 + data = {"x": np.arange(8, dtype=np.int64), "y": np.int64(0)} + df = DataFrame(data).copy() + ser = df["y"] + + # previously this iat setting would split the block and fail to clear + # the item_cache. + with tm.assert_cow_warning(warn_copy_on_write): + indexer_ial(df)[7, 0] = 9999 + + with tm.assert_cow_warning(warn_copy_on_write): + indexer_ial(df)[7, 1] = 1234 + + assert df.iat[7, 1] == 1234 + if not using_copy_on_write: + assert ser.iloc[-1] == 1234 + assert df.iloc[-1, -1] == 1234 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_iloc.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_iloc.py new file mode 100644 index 0000000000000000000000000000000000000000..4e18ec5ea99528799a4751b29e76a4f926d33855 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_iloc.py @@ -0,0 +1,1533 @@ +""" test positional based indexing with iloc """ + +from datetime import datetime +import re + +import numpy as np +import pytest + +from pandas.errors import IndexingError +import pandas.util._test_decorators as td + +from pandas import ( + NA, + Categorical, + CategoricalDtype, + DataFrame, + Index, + Interval, + NaT, + Series, + Timestamp, + array, + concat, + date_range, + interval_range, + isna, + to_datetime, +) +import pandas._testing as tm +from pandas.api.types import is_scalar +from pandas.tests.indexing.common import check_indexing_smoketest_or_raises + +# We pass through the error message from numpy +_slice_iloc_msg = re.escape( + "only integers, slices (`:`), ellipsis (`...`), numpy.newaxis (`None`) " + "and integer or boolean arrays are valid indices" +) + + +class TestiLoc: + @pytest.mark.parametrize("key", [2, -1, [0, 1, 2]]) + @pytest.mark.parametrize("kind", ["series", "frame"]) + @pytest.mark.parametrize( + "col", + ["labels", "mixed", "ts", "floats", "empty"], + ) + def test_iloc_getitem_int_and_list_int(self, key, kind, col, request): + obj = request.getfixturevalue(f"{kind}_{col}") + check_indexing_smoketest_or_raises( + obj, + "iloc", + key, + fails=IndexError, + ) + + # array of ints (GH5006), make sure that a single indexer is returning + # the correct type + + +class TestiLocBaseIndependent: + """Tests Independent Of Base Class""" + + @pytest.mark.parametrize( + "key", + [ + slice(None), + slice(3), + range(3), + [0, 1, 2], + Index(range(3)), + np.asarray([0, 1, 2]), + ], + ) + @pytest.mark.parametrize("indexer", [tm.loc, tm.iloc]) + def test_iloc_setitem_fullcol_categorical(self, indexer, key, using_array_manager): + frame = DataFrame({0: range(3)}, dtype=object) + + cat = Categorical(["alpha", "beta", "gamma"]) + + if not using_array_manager: + assert frame._mgr.blocks[0]._can_hold_element(cat) + + df = frame.copy() + orig_vals = df.values + + indexer(df)[key, 0] = cat + + expected = DataFrame({0: cat}).astype(object) + if not using_array_manager: + assert np.shares_memory(df[0].values, orig_vals) + + tm.assert_frame_equal(df, expected) + + # check we dont have a view on cat (may be undesired GH#39986) + df.iloc[0, 0] = "gamma" + assert cat[0] != "gamma" + + # pre-2.0 with mixed dataframe ("split" path) we always overwrote the + # column. as of 2.0 we correctly write "into" the column, so + # we retain the object dtype. + frame = DataFrame({0: np.array([0, 1, 2], dtype=object), 1: range(3)}) + df = frame.copy() + indexer(df)[key, 0] = cat + expected = DataFrame({0: Series(cat.astype(object), dtype=object), 1: range(3)}) + tm.assert_frame_equal(df, expected) + + @pytest.mark.filterwarnings("ignore:Setting a value on a view:FutureWarning") + @pytest.mark.parametrize("has_ref", [True, False]) + @pytest.mark.parametrize("box", [array, Series]) + def test_iloc_setitem_ea_inplace( + self, frame_or_series, box, has_ref, using_copy_on_write + ): + # GH#38952 Case with not setting a full column + # IntegerArray without NAs + arr = array([1, 2, 3, 4]) + obj = frame_or_series(arr.to_numpy("i8")) + if has_ref: + view = obj[:] # noqa: F841 + + if frame_or_series is Series: + values = obj.values + else: + values = obj._mgr.arrays[0] + + if frame_or_series is Series: + obj.iloc[:2] = box(arr[2:]) + else: + obj.iloc[:2, 0] = box(arr[2:]) + + expected = frame_or_series(np.array([3, 4, 3, 4], dtype="i8")) + tm.assert_equal(obj, expected) + + # Check that we are actually in-place + if not has_ref: + if frame_or_series is Series: + if using_copy_on_write: + assert obj.values is not values + assert np.shares_memory(obj.values, values) + else: + assert obj.values is values + else: + assert np.shares_memory(obj[0].values, values) + + def test_is_scalar_access(self): + # GH#32085 index with duplicates doesn't matter for _is_scalar_access + index = Index([1, 2, 1]) + ser = Series(range(3), index=index) + + assert ser.iloc._is_scalar_access((1,)) + + df = ser.to_frame() + assert df.iloc._is_scalar_access((1, 0)) + + def test_iloc_exceeds_bounds(self): + # GH6296 + # iloc should allow indexers that exceed the bounds + df = DataFrame(np.random.default_rng(2).random((20, 5)), columns=list("ABCDE")) + + # lists of positions should raise IndexError! + msg = "positional indexers are out-of-bounds" + with pytest.raises(IndexError, match=msg): + df.iloc[:, [0, 1, 2, 3, 4, 5]] + with pytest.raises(IndexError, match=msg): + df.iloc[[1, 30]] + with pytest.raises(IndexError, match=msg): + df.iloc[[1, -30]] + with pytest.raises(IndexError, match=msg): + df.iloc[[100]] + + s = df["A"] + with pytest.raises(IndexError, match=msg): + s.iloc[[100]] + with pytest.raises(IndexError, match=msg): + s.iloc[[-100]] + + # still raise on a single indexer + msg = "single positional indexer is out-of-bounds" + with pytest.raises(IndexError, match=msg): + df.iloc[30] + with pytest.raises(IndexError, match=msg): + df.iloc[-30] + + # GH10779 + # single positive/negative indexer exceeding Series bounds should raise + # an IndexError + with pytest.raises(IndexError, match=msg): + s.iloc[30] + with pytest.raises(IndexError, match=msg): + s.iloc[-30] + + # slices are ok + result = df.iloc[:, 4:10] # 0 < start < len < stop + expected = df.iloc[:, 4:] + tm.assert_frame_equal(result, expected) + + result = df.iloc[:, -4:-10] # stop < 0 < start < len + expected = df.iloc[:, :0] + tm.assert_frame_equal(result, expected) + + result = df.iloc[:, 10:4:-1] # 0 < stop < len < start (down) + expected = df.iloc[:, :4:-1] + tm.assert_frame_equal(result, expected) + + result = df.iloc[:, 4:-10:-1] # stop < 0 < start < len (down) + expected = df.iloc[:, 4::-1] + tm.assert_frame_equal(result, expected) + + result = df.iloc[:, -10:4] # start < 0 < stop < len + expected = df.iloc[:, :4] + tm.assert_frame_equal(result, expected) + + result = df.iloc[:, 10:4] # 0 < stop < len < start + expected = df.iloc[:, :0] + tm.assert_frame_equal(result, expected) + + result = df.iloc[:, -10:-11:-1] # stop < start < 0 < len (down) + expected = df.iloc[:, :0] + tm.assert_frame_equal(result, expected) + + result = df.iloc[:, 10:11] # 0 < len < start < stop + expected = df.iloc[:, :0] + tm.assert_frame_equal(result, expected) + + # slice bounds exceeding is ok + result = s.iloc[18:30] + expected = s.iloc[18:] + tm.assert_series_equal(result, expected) + + result = s.iloc[30:] + expected = s.iloc[:0] + tm.assert_series_equal(result, expected) + + result = s.iloc[30::-1] + expected = s.iloc[::-1] + tm.assert_series_equal(result, expected) + + # doc example + dfl = DataFrame( + np.random.default_rng(2).standard_normal((5, 2)), columns=list("AB") + ) + tm.assert_frame_equal( + dfl.iloc[:, 2:3], + DataFrame(index=dfl.index, columns=Index([], dtype=dfl.columns.dtype)), + ) + tm.assert_frame_equal(dfl.iloc[:, 1:3], dfl.iloc[:, [1]]) + tm.assert_frame_equal(dfl.iloc[4:6], dfl.iloc[[4]]) + + msg = "positional indexers are out-of-bounds" + with pytest.raises(IndexError, match=msg): + dfl.iloc[[4, 5, 6]] + msg = "single positional indexer is out-of-bounds" + with pytest.raises(IndexError, match=msg): + dfl.iloc[:, 4] + + @pytest.mark.parametrize("index,columns", [(np.arange(20), list("ABCDE"))]) + @pytest.mark.parametrize( + "index_vals,column_vals", + [ + ([slice(None), ["A", "D"]]), + (["1", "2"], slice(None)), + ([datetime(2019, 1, 1)], slice(None)), + ], + ) + def test_iloc_non_integer_raises(self, index, columns, index_vals, column_vals): + # GH 25753 + df = DataFrame( + np.random.default_rng(2).standard_normal((len(index), len(columns))), + index=index, + columns=columns, + ) + msg = ".iloc requires numeric indexers, got" + with pytest.raises(IndexError, match=msg): + df.iloc[index_vals, column_vals] + + def test_iloc_getitem_invalid_scalar(self, frame_or_series): + # GH 21982 + + obj = DataFrame(np.arange(100).reshape(10, 10)) + obj = tm.get_obj(obj, frame_or_series) + + with pytest.raises(TypeError, match="Cannot index by location index"): + obj.iloc["a"] + + def test_iloc_array_not_mutating_negative_indices(self): + # GH 21867 + array_with_neg_numbers = np.array([1, 2, -1]) + array_copy = array_with_neg_numbers.copy() + df = DataFrame( + {"A": [100, 101, 102], "B": [103, 104, 105], "C": [106, 107, 108]}, + index=[1, 2, 3], + ) + df.iloc[array_with_neg_numbers] + tm.assert_numpy_array_equal(array_with_neg_numbers, array_copy) + df.iloc[:, array_with_neg_numbers] + tm.assert_numpy_array_equal(array_with_neg_numbers, array_copy) + + def test_iloc_getitem_neg_int_can_reach_first_index(self): + # GH10547 and GH10779 + # negative integers should be able to reach index 0 + df = DataFrame({"A": [2, 3, 5], "B": [7, 11, 13]}) + s = df["A"] + + expected = df.iloc[0] + result = df.iloc[-3] + tm.assert_series_equal(result, expected) + + expected = df.iloc[[0]] + result = df.iloc[[-3]] + tm.assert_frame_equal(result, expected) + + expected = s.iloc[0] + result = s.iloc[-3] + assert result == expected + + expected = s.iloc[[0]] + result = s.iloc[[-3]] + tm.assert_series_equal(result, expected) + + # check the length 1 Series case highlighted in GH10547 + expected = Series(["a"], index=["A"]) + result = expected.iloc[[-1]] + tm.assert_series_equal(result, expected) + + def test_iloc_getitem_dups(self): + # GH 6766 + df1 = DataFrame([{"A": None, "B": 1}, {"A": 2, "B": 2}]) + df2 = DataFrame([{"A": 3, "B": 3}, {"A": 4, "B": 4}]) + df = concat([df1, df2], axis=1) + + # cross-sectional indexing + result = df.iloc[0, 0] + assert isna(result) + + result = df.iloc[0, :] + expected = Series([np.nan, 1, 3, 3], index=["A", "B", "A", "B"], name=0) + tm.assert_series_equal(result, expected) + + def test_iloc_getitem_array(self): + df = DataFrame( + [ + {"A": 1, "B": 2, "C": 3}, + {"A": 100, "B": 200, "C": 300}, + {"A": 1000, "B": 2000, "C": 3000}, + ] + ) + + expected = DataFrame([{"A": 1, "B": 2, "C": 3}]) + tm.assert_frame_equal(df.iloc[[0]], expected) + + expected = DataFrame([{"A": 1, "B": 2, "C": 3}, {"A": 100, "B": 200, "C": 300}]) + tm.assert_frame_equal(df.iloc[[0, 1]], expected) + + expected = DataFrame([{"B": 2, "C": 3}, {"B": 2000, "C": 3000}], index=[0, 2]) + result = df.iloc[[0, 2], [1, 2]] + tm.assert_frame_equal(result, expected) + + def test_iloc_getitem_bool(self): + df = DataFrame( + [ + {"A": 1, "B": 2, "C": 3}, + {"A": 100, "B": 200, "C": 300}, + {"A": 1000, "B": 2000, "C": 3000}, + ] + ) + + expected = DataFrame([{"A": 1, "B": 2, "C": 3}, {"A": 100, "B": 200, "C": 300}]) + result = df.iloc[[True, True, False]] + tm.assert_frame_equal(result, expected) + + expected = DataFrame( + [{"A": 1, "B": 2, "C": 3}, {"A": 1000, "B": 2000, "C": 3000}], index=[0, 2] + ) + result = df.iloc[lambda x: x.index % 2 == 0] + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("index", [[True, False], [True, False, True, False]]) + def test_iloc_getitem_bool_diff_len(self, index): + # GH26658 + s = Series([1, 2, 3]) + msg = f"Boolean index has wrong length: {len(index)} instead of {len(s)}" + with pytest.raises(IndexError, match=msg): + s.iloc[index] + + def test_iloc_getitem_slice(self): + df = DataFrame( + [ + {"A": 1, "B": 2, "C": 3}, + {"A": 100, "B": 200, "C": 300}, + {"A": 1000, "B": 2000, "C": 3000}, + ] + ) + + expected = DataFrame([{"A": 1, "B": 2, "C": 3}, {"A": 100, "B": 200, "C": 300}]) + result = df.iloc[:2] + tm.assert_frame_equal(result, expected) + + expected = DataFrame([{"A": 100, "B": 200}], index=[1]) + result = df.iloc[1:2, 0:2] + tm.assert_frame_equal(result, expected) + + expected = DataFrame( + [{"A": 1, "C": 3}, {"A": 100, "C": 300}, {"A": 1000, "C": 3000}] + ) + result = df.iloc[:, lambda df: [0, 2]] + tm.assert_frame_equal(result, expected) + + def test_iloc_getitem_slice_dups(self): + df1 = DataFrame( + np.random.default_rng(2).standard_normal((10, 4)), + columns=["A", "A", "B", "B"], + ) + df2 = DataFrame( + np.random.default_rng(2).integers(0, 10, size=20).reshape(10, 2), + columns=["A", "C"], + ) + + # axis=1 + df = concat([df1, df2], axis=1) + tm.assert_frame_equal(df.iloc[:, :4], df1) + tm.assert_frame_equal(df.iloc[:, 4:], df2) + + df = concat([df2, df1], axis=1) + tm.assert_frame_equal(df.iloc[:, :2], df2) + tm.assert_frame_equal(df.iloc[:, 2:], df1) + + exp = concat([df2, df1.iloc[:, [0]]], axis=1) + tm.assert_frame_equal(df.iloc[:, 0:3], exp) + + # axis=0 + df = concat([df, df], axis=0) + tm.assert_frame_equal(df.iloc[0:10, :2], df2) + tm.assert_frame_equal(df.iloc[0:10, 2:], df1) + tm.assert_frame_equal(df.iloc[10:, :2], df2) + tm.assert_frame_equal(df.iloc[10:, 2:], df1) + + @pytest.mark.filterwarnings("ignore:Setting a value on a view:FutureWarning") + @pytest.mark.parametrize("has_ref", [True, False]) + def test_iloc_setitem(self, warn_copy_on_write, has_ref): + df = DataFrame( + np.random.default_rng(2).standard_normal((4, 4)), + index=np.arange(0, 8, 2), + columns=np.arange(0, 12, 3), + ) + if has_ref: + view = df[:] # noqa: F841 + + df.iloc[1, 1] = 1 + result = df.iloc[1, 1] + assert result == 1 + + df.iloc[:, 2:3] = 0 + expected = df.iloc[:, 2:3] + result = df.iloc[:, 2:3] + tm.assert_frame_equal(result, expected) + + # GH5771 + s = Series(0, index=[4, 5, 6]) + s.iloc[1:2] += 1 + expected = Series([0, 1, 0], index=[4, 5, 6]) + tm.assert_series_equal(s, expected) + + @pytest.mark.filterwarnings("ignore:Setting a value on a view:FutureWarning") + @pytest.mark.parametrize("has_ref", [True, False]) + def test_iloc_setitem_axis_argument(self, has_ref): + # GH45032 + df = DataFrame([[6, "c", 10], [7, "d", 11], [8, "e", 12]]) + df[1] = df[1].astype(object) + if has_ref: + view = df[:] + expected = DataFrame([[6, "c", 10], [7, "d", 11], [5, 5, 5]]) + expected[1] = expected[1].astype(object) + df.iloc(axis=0)[2] = 5 + tm.assert_frame_equal(df, expected) + + df = DataFrame([[6, "c", 10], [7, "d", 11], [8, "e", 12]]) + df[1] = df[1].astype(object) + if has_ref: + view = df[:] # noqa: F841 + expected = DataFrame([[6, "c", 5], [7, "d", 5], [8, "e", 5]]) + expected[1] = expected[1].astype(object) + df.iloc(axis=1)[2] = 5 + tm.assert_frame_equal(df, expected) + + @pytest.mark.filterwarnings("ignore:Setting a value on a view:FutureWarning") + @pytest.mark.parametrize("has_ref", [True, False]) + def test_iloc_setitem_list(self, has_ref): + # setitem with an iloc list + df = DataFrame( + np.arange(9).reshape((3, 3)), index=["A", "B", "C"], columns=["A", "B", "C"] + ) + if has_ref: + view = df[:] # noqa: F841 + df.iloc[[0, 1], [1, 2]] + df.iloc[[0, 1], [1, 2]] += 100 + + expected = DataFrame( + np.array([0, 101, 102, 3, 104, 105, 6, 7, 8]).reshape((3, 3)), + index=["A", "B", "C"], + columns=["A", "B", "C"], + ) + tm.assert_frame_equal(df, expected) + + def test_iloc_setitem_pandas_object(self): + # GH 17193 + s_orig = Series([0, 1, 2, 3]) + expected = Series([0, -1, -2, 3]) + + s = s_orig.copy() + s.iloc[Series([1, 2])] = [-1, -2] + tm.assert_series_equal(s, expected) + + s = s_orig.copy() + s.iloc[Index([1, 2])] = [-1, -2] + tm.assert_series_equal(s, expected) + + def test_iloc_setitem_dups(self): + # GH 6766 + # iloc with a mask aligning from another iloc + df1 = DataFrame([{"A": None, "B": 1}, {"A": 2, "B": 2}]) + df2 = DataFrame([{"A": 3, "B": 3}, {"A": 4, "B": 4}]) + df = concat([df1, df2], axis=1) + + expected = df.fillna(3) + inds = np.isnan(df.iloc[:, 0]) + mask = inds[inds].index + df.iloc[mask, 0] = df.iloc[mask, 2] + tm.assert_frame_equal(df, expected) + + # del a dup column across blocks + expected = DataFrame({0: [1, 2], 1: [3, 4]}) + expected.columns = ["B", "B"] + del df["A"] + tm.assert_frame_equal(df, expected) + + # assign back to self + df.iloc[[0, 1], [0, 1]] = df.iloc[[0, 1], [0, 1]] + tm.assert_frame_equal(df, expected) + + # reversed x 2 + df.iloc[[1, 0], [0, 1]] = df.iloc[[1, 0], [0, 1]].reset_index(drop=True) + df.iloc[[1, 0], [0, 1]] = df.iloc[[1, 0], [0, 1]].reset_index(drop=True) + tm.assert_frame_equal(df, expected) + + def test_iloc_setitem_frame_duplicate_columns_multiple_blocks( + self, using_array_manager + ): + # Same as the "assign back to self" check in test_iloc_setitem_dups + # but on a DataFrame with multiple blocks + df = DataFrame([[0, 1], [2, 3]], columns=["B", "B"]) + + # setting float values that can be held by existing integer arrays + # is inplace + df.iloc[:, 0] = df.iloc[:, 0].astype("f8") + if not using_array_manager: + assert len(df._mgr.blocks) == 1 + + # if the assigned values cannot be held by existing integer arrays, + # we cast + with tm.assert_produces_warning(FutureWarning, match="incompatible dtype"): + df.iloc[:, 0] = df.iloc[:, 0] + 0.5 + if not using_array_manager: + assert len(df._mgr.blocks) == 2 + + expected = df.copy() + + # assign back to self + df.iloc[[0, 1], [0, 1]] = df.iloc[[0, 1], [0, 1]] + + tm.assert_frame_equal(df, expected) + + # TODO: GH#27620 this test used to compare iloc against ix; check if this + # is redundant with another test comparing iloc against loc + def test_iloc_getitem_frame(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 4)), + index=range(0, 20, 2), + columns=range(0, 8, 2), + ) + + result = df.iloc[2] + exp = df.loc[4] + tm.assert_series_equal(result, exp) + + result = df.iloc[2, 2] + exp = df.loc[4, 4] + assert result == exp + + # slice + result = df.iloc[4:8] + expected = df.loc[8:14] + tm.assert_frame_equal(result, expected) + + result = df.iloc[:, 2:3] + expected = df.loc[:, 4:5] + tm.assert_frame_equal(result, expected) + + # list of integers + result = df.iloc[[0, 1, 3]] + expected = df.loc[[0, 2, 6]] + tm.assert_frame_equal(result, expected) + + result = df.iloc[[0, 1, 3], [0, 1]] + expected = df.loc[[0, 2, 6], [0, 2]] + tm.assert_frame_equal(result, expected) + + # neg indices + result = df.iloc[[-1, 1, 3], [-1, 1]] + expected = df.loc[[18, 2, 6], [6, 2]] + tm.assert_frame_equal(result, expected) + + # dups indices + result = df.iloc[[-1, -1, 1, 3], [-1, 1]] + expected = df.loc[[18, 18, 2, 6], [6, 2]] + tm.assert_frame_equal(result, expected) + + # with index-like + s = Series(index=range(1, 5), dtype=object) + result = df.iloc[s.index] + expected = df.loc[[2, 4, 6, 8]] + tm.assert_frame_equal(result, expected) + + def test_iloc_getitem_labelled_frame(self): + # try with labelled frame + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 4)), + index=list("abcdefghij"), + columns=list("ABCD"), + ) + + result = df.iloc[1, 1] + exp = df.loc["b", "B"] + assert result == exp + + result = df.iloc[:, 2:3] + expected = df.loc[:, ["C"]] + tm.assert_frame_equal(result, expected) + + # negative indexing + result = df.iloc[-1, -1] + exp = df.loc["j", "D"] + assert result == exp + + # out-of-bounds exception + msg = "index 5 is out of bounds for axis 0 with size 4|index out of bounds" + with pytest.raises(IndexError, match=msg): + df.iloc[10, 5] + + # trying to use a label + msg = ( + r"Location based indexing can only have \[integer, integer " + r"slice \(START point is INCLUDED, END point is EXCLUDED\), " + r"listlike of integers, boolean array\] types" + ) + with pytest.raises(ValueError, match=msg): + df.iloc["j", "D"] + + def test_iloc_getitem_doc_issue(self, using_array_manager): + # multi axis slicing issue with single block + # surfaced in GH 6059 + + arr = np.random.default_rng(2).standard_normal((6, 4)) + index = date_range("20130101", periods=6) + columns = list("ABCD") + df = DataFrame(arr, index=index, columns=columns) + + # defines ref_locs + df.describe() + + result = df.iloc[3:5, 0:2] + + expected = DataFrame(arr[3:5, 0:2], index=index[3:5], columns=columns[0:2]) + tm.assert_frame_equal(result, expected) + + # for dups + df.columns = list("aaaa") + result = df.iloc[3:5, 0:2] + + expected = DataFrame(arr[3:5, 0:2], index=index[3:5], columns=list("aa")) + tm.assert_frame_equal(result, expected) + + # related + arr = np.random.default_rng(2).standard_normal((6, 4)) + index = list(range(0, 12, 2)) + columns = list(range(0, 8, 2)) + df = DataFrame(arr, index=index, columns=columns) + + if not using_array_manager: + df._mgr.blocks[0].mgr_locs + result = df.iloc[1:5, 2:4] + expected = DataFrame(arr[1:5, 2:4], index=index[1:5], columns=columns[2:4]) + tm.assert_frame_equal(result, expected) + + @pytest.mark.filterwarnings("ignore:Setting a value on a view:FutureWarning") + @pytest.mark.parametrize("has_ref", [True, False]) + def test_iloc_setitem_series(self, has_ref): + df = DataFrame( + np.random.default_rng(2).standard_normal((10, 4)), + index=list("abcdefghij"), + columns=list("ABCD"), + ) + if has_ref: + view = df[:] # noqa: F841 + + df.iloc[1, 1] = 1 + result = df.iloc[1, 1] + assert result == 1 + + df.iloc[:, 2:3] = 0 + expected = df.iloc[:, 2:3] + result = df.iloc[:, 2:3] + tm.assert_frame_equal(result, expected) + + s = Series(np.random.default_rng(2).standard_normal(10), index=range(0, 20, 2)) + + s.iloc[1] = 1 + result = s.iloc[1] + assert result == 1 + + s.iloc[:4] = 0 + expected = s.iloc[:4] + result = s.iloc[:4] + tm.assert_series_equal(result, expected) + + s = Series([-1] * 6) + s.iloc[0::2] = [0, 2, 4] + s.iloc[1::2] = [1, 3, 5] + result = s + expected = Series([0, 1, 2, 3, 4, 5]) + tm.assert_series_equal(result, expected) + + @pytest.mark.filterwarnings("ignore:Setting a value on a view:FutureWarning") + @pytest.mark.parametrize("has_ref", [True, False]) + def test_iloc_setitem_list_of_lists(self, has_ref): + # GH 7551 + # list-of-list is set incorrectly in mixed vs. single dtyped frames + df = DataFrame( + {"A": np.arange(5, dtype="int64"), "B": np.arange(5, 10, dtype="int64")} + ) + if has_ref: + view = df[:] + df.iloc[2:4] = [[10, 11], [12, 13]] + expected = DataFrame({"A": [0, 1, 10, 12, 4], "B": [5, 6, 11, 13, 9]}) + tm.assert_frame_equal(df, expected) + + df = DataFrame( + {"A": ["a", "b", "c", "d", "e"], "B": np.arange(5, 10, dtype="int64")} + ) + if has_ref: + view = df[:] # noqa: F841 + df.iloc[2:4] = [["x", 11], ["y", 13]] + expected = DataFrame({"A": ["a", "b", "x", "y", "e"], "B": [5, 6, 11, 13, 9]}) + tm.assert_frame_equal(df, expected) + + @pytest.mark.filterwarnings("ignore:Setting a value on a view:FutureWarning") + @pytest.mark.parametrize("has_ref", [True, False]) + @pytest.mark.parametrize("indexer", [[0], slice(None, 1, None), np.array([0])]) + @pytest.mark.parametrize("value", [["Z"], np.array(["Z"])]) + def test_iloc_setitem_with_scalar_index(self, has_ref, indexer, value): + # GH #19474 + # assigning like "df.iloc[0, [0]] = ['Z']" should be evaluated + # elementwisely, not using "setter('A', ['Z'])". + + # Set object type to avoid upcast when setting "Z" + df = DataFrame([[1, 2], [3, 4]], columns=["A", "B"]).astype({"A": object}) + if has_ref: + view = df[:] # noqa: F841 + df.iloc[0, indexer] = value + result = df.iloc[0, 0] + + assert is_scalar(result) and result == "Z" + + @pytest.mark.filterwarnings("ignore::UserWarning") + def test_iloc_mask(self): + # GH 3631, iloc with a mask (of a series) should raise + df = DataFrame(list(range(5)), index=list("ABCDE"), columns=["a"]) + mask = df.a % 2 == 0 + msg = "iLocation based boolean indexing cannot use an indexable as a mask" + with pytest.raises(ValueError, match=msg): + df.iloc[mask] + mask.index = range(len(mask)) + msg = "iLocation based boolean indexing on an integer type is not available" + with pytest.raises(NotImplementedError, match=msg): + df.iloc[mask] + + # ndarray ok + result = df.iloc[np.array([True] * len(mask), dtype=bool)] + tm.assert_frame_equal(result, df) + + # the possibilities + locs = np.arange(4) + nums = 2**locs + reps = [bin(num) for num in nums] + df = DataFrame({"locs": locs, "nums": nums}, reps) + + expected = { + (None, ""): "0b1100", + (None, ".loc"): "0b1100", + (None, ".iloc"): "0b1100", + ("index", ""): "0b11", + ("index", ".loc"): "0b11", + ("index", ".iloc"): ( + "iLocation based boolean indexing cannot use an indexable as a mask" + ), + ("locs", ""): "Unalignable boolean Series provided as indexer " + "(index of the boolean Series and of the indexed " + "object do not match).", + ("locs", ".loc"): "Unalignable boolean Series provided as indexer " + "(index of the boolean Series and of the " + "indexed object do not match).", + ("locs", ".iloc"): ( + "iLocation based boolean indexing on an " + "integer type is not available" + ), + } + + # UserWarnings from reindex of a boolean mask + for idx in [None, "index", "locs"]: + mask = (df.nums > 2).values + if idx: + mask_index = getattr(df, idx)[::-1] + mask = Series(mask, list(mask_index)) + for method in ["", ".loc", ".iloc"]: + try: + if method: + accessor = getattr(df, method[1:]) + else: + accessor = df + answer = str(bin(accessor[mask]["nums"].sum())) + except (ValueError, IndexingError, NotImplementedError) as err: + answer = str(err) + + key = ( + idx, + method, + ) + r = expected.get(key) + if r != answer: + raise AssertionError( + f"[{key}] does not match [{answer}], received [{r}]" + ) + + def test_iloc_non_unique_indexing(self): + # GH 4017, non-unique indexing (on the axis) + df = DataFrame({"A": [0.1] * 3000, "B": [1] * 3000}) + idx = np.arange(30) * 99 + expected = df.iloc[idx] + + df3 = concat([df, 2 * df, 3 * df]) + result = df3.iloc[idx] + + tm.assert_frame_equal(result, expected) + + df2 = DataFrame({"A": [0.1] * 1000, "B": [1] * 1000}) + df2 = concat([df2, 2 * df2, 3 * df2]) + + with pytest.raises(KeyError, match="not in index"): + df2.loc[idx] + + def test_iloc_empty_list_indexer_is_ok(self): + df = DataFrame( + np.ones((5, 2)), + index=Index([f"i-{i}" for i in range(5)], name="a"), + columns=Index([f"i-{i}" for i in range(2)], name="a"), + ) + # vertical empty + tm.assert_frame_equal( + df.iloc[:, []], + df.iloc[:, :0], + check_index_type=True, + check_column_type=True, + ) + # horizontal empty + tm.assert_frame_equal( + df.iloc[[], :], + df.iloc[:0, :], + check_index_type=True, + check_column_type=True, + ) + # horizontal empty + tm.assert_frame_equal( + df.iloc[[]], df.iloc[:0, :], check_index_type=True, check_column_type=True + ) + + def test_identity_slice_returns_new_object( + self, using_copy_on_write, warn_copy_on_write + ): + # GH13873 + original_df = DataFrame({"a": [1, 2, 3]}) + sliced_df = original_df.iloc[:] + assert sliced_df is not original_df + + # should be a shallow copy + assert np.shares_memory(original_df["a"], sliced_df["a"]) + + # Setting using .loc[:, "a"] sets inplace so alters both sliced and orig + # depending on CoW + with tm.assert_cow_warning(warn_copy_on_write): + original_df.loc[:, "a"] = [4, 4, 4] + if using_copy_on_write: + assert (sliced_df["a"] == [1, 2, 3]).all() + else: + assert (sliced_df["a"] == 4).all() + + original_series = Series([1, 2, 3, 4, 5, 6]) + sliced_series = original_series.iloc[:] + assert sliced_series is not original_series + + # should also be a shallow copy + with tm.assert_cow_warning(warn_copy_on_write): + original_series[:3] = [7, 8, 9] + if using_copy_on_write: + # shallow copy not updated (CoW) + assert all(sliced_series[:3] == [1, 2, 3]) + else: + assert all(sliced_series[:3] == [7, 8, 9]) + + def test_indexing_zerodim_np_array(self): + # GH24919 + df = DataFrame([[1, 2], [3, 4]]) + result = df.iloc[np.array(0)] + s = Series([1, 2], name=0) + tm.assert_series_equal(result, s) + + def test_series_indexing_zerodim_np_array(self): + # GH24919 + s = Series([1, 2]) + result = s.iloc[np.array(0)] + assert result == 1 + + def test_iloc_setitem_categorical_updates_inplace(self): + # Mixed dtype ensures we go through take_split_path in setitem_with_indexer + cat = Categorical(["A", "B", "C"]) + df = DataFrame({1: cat, 2: [1, 2, 3]}, copy=False) + + assert tm.shares_memory(df[1], cat) + + # With the enforcement of GH#45333 in 2.0, this modifies original + # values inplace + df.iloc[:, 0] = cat[::-1] + + assert tm.shares_memory(df[1], cat) + expected = Categorical(["C", "B", "A"], categories=["A", "B", "C"]) + tm.assert_categorical_equal(cat, expected) + + def test_iloc_with_boolean_operation(self): + # GH 20627 + result = DataFrame([[0, 1], [2, 3], [4, 5], [6, np.nan]]) + result.iloc[result.index <= 2] *= 2 + expected = DataFrame([[0, 2], [4, 6], [8, 10], [6, np.nan]]) + tm.assert_frame_equal(result, expected) + + result.iloc[result.index > 2] *= 2 + expected = DataFrame([[0, 2], [4, 6], [8, 10], [12, np.nan]]) + tm.assert_frame_equal(result, expected) + + result.iloc[[True, True, False, False]] *= 2 + expected = DataFrame([[0, 4], [8, 12], [8, 10], [12, np.nan]]) + tm.assert_frame_equal(result, expected) + + result.iloc[[False, False, True, True]] /= 2 + expected = DataFrame([[0, 4.0], [8, 12.0], [4, 5.0], [6, np.nan]]) + tm.assert_frame_equal(result, expected) + + def test_iloc_getitem_singlerow_slice_categoricaldtype_gives_series(self): + # GH#29521 + df = DataFrame({"x": Categorical("a b c d e".split())}) + result = df.iloc[0] + raw_cat = Categorical(["a"], categories=["a", "b", "c", "d", "e"]) + expected = Series(raw_cat, index=["x"], name=0, dtype="category") + + tm.assert_series_equal(result, expected) + + def test_iloc_getitem_categorical_values(self): + # GH#14580 + # test iloc() on Series with Categorical data + + ser = Series([1, 2, 3]).astype("category") + + # get slice + result = ser.iloc[0:2] + expected = Series([1, 2]).astype(CategoricalDtype([1, 2, 3])) + tm.assert_series_equal(result, expected) + + # get list of indexes + result = ser.iloc[[0, 1]] + expected = Series([1, 2]).astype(CategoricalDtype([1, 2, 3])) + tm.assert_series_equal(result, expected) + + # get boolean array + result = ser.iloc[[True, False, False]] + expected = Series([1]).astype(CategoricalDtype([1, 2, 3])) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("value", [None, NaT, np.nan]) + def test_iloc_setitem_td64_values_cast_na(self, value): + # GH#18586 + series = Series([0, 1, 2], dtype="timedelta64[ns]") + series.iloc[0] = value + expected = Series([NaT, 1, 2], dtype="timedelta64[ns]") + tm.assert_series_equal(series, expected) + + @pytest.mark.parametrize("not_na", [Interval(0, 1), "a", 1.0]) + def test_setitem_mix_of_nan_and_interval(self, not_na, nulls_fixture): + # GH#27937 + dtype = CategoricalDtype(categories=[not_na]) + ser = Series( + [nulls_fixture, nulls_fixture, nulls_fixture, nulls_fixture], dtype=dtype + ) + ser.iloc[:3] = [nulls_fixture, not_na, nulls_fixture] + exp = Series([nulls_fixture, not_na, nulls_fixture, nulls_fixture], dtype=dtype) + tm.assert_series_equal(ser, exp) + + def test_iloc_setitem_empty_frame_raises_with_3d_ndarray(self): + idx = Index([]) + obj = DataFrame( + np.random.default_rng(2).standard_normal((len(idx), len(idx))), + index=idx, + columns=idx, + ) + nd3 = np.random.default_rng(2).integers(5, size=(2, 2, 2)) + + msg = f"Cannot set values with ndim > {obj.ndim}" + with pytest.raises(ValueError, match=msg): + obj.iloc[nd3] = 0 + + @pytest.mark.parametrize("indexer", [tm.loc, tm.iloc]) + def test_iloc_getitem_read_only_values(self, indexer): + # GH#10043 this is fundamentally a test for iloc, but test loc while + # we're here + rw_array = np.eye(10) + rw_df = DataFrame(rw_array) + + ro_array = np.eye(10) + ro_array.setflags(write=False) + ro_df = DataFrame(ro_array) + + tm.assert_frame_equal(indexer(rw_df)[[1, 2, 3]], indexer(ro_df)[[1, 2, 3]]) + tm.assert_frame_equal(indexer(rw_df)[[1]], indexer(ro_df)[[1]]) + tm.assert_series_equal(indexer(rw_df)[1], indexer(ro_df)[1]) + tm.assert_frame_equal(indexer(rw_df)[1:3], indexer(ro_df)[1:3]) + + def test_iloc_getitem_readonly_key(self): + # GH#17192 iloc with read-only array raising TypeError + df = DataFrame({"data": np.ones(100, dtype="float64")}) + indices = np.array([1, 3, 6]) + indices.flags.writeable = False + + result = df.iloc[indices] + expected = df.loc[[1, 3, 6]] + tm.assert_frame_equal(result, expected) + + result = df["data"].iloc[indices] + expected = df["data"].loc[[1, 3, 6]] + tm.assert_series_equal(result, expected) + + def test_iloc_assign_series_to_df_cell(self): + # GH 37593 + df = DataFrame(columns=["a"], index=[0]) + df.iloc[0, 0] = Series([1, 2, 3]) + expected = DataFrame({"a": [Series([1, 2, 3])]}, columns=["a"], index=[0]) + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize("klass", [list, np.array]) + def test_iloc_setitem_bool_indexer(self, klass): + # GH#36741 + df = DataFrame({"flag": ["x", "y", "z"], "value": [1, 3, 4]}) + indexer = klass([True, False, False]) + df.iloc[indexer, 1] = df.iloc[indexer, 1] * 2 + expected = DataFrame({"flag": ["x", "y", "z"], "value": [2, 3, 4]}) + tm.assert_frame_equal(df, expected) + + @pytest.mark.filterwarnings("ignore:Setting a value on a view:FutureWarning") + @pytest.mark.parametrize("has_ref", [True, False]) + @pytest.mark.parametrize("indexer", [[1], slice(1, 2)]) + def test_iloc_setitem_pure_position_based(self, indexer, has_ref): + # GH#22046 + df1 = DataFrame({"a2": [11, 12, 13], "b2": [14, 15, 16]}) + df2 = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6], "c": [7, 8, 9]}) + if has_ref: + view = df2[:] # noqa: F841 + df2.iloc[:, indexer] = df1.iloc[:, [0]] + expected = DataFrame({"a": [1, 2, 3], "b": [11, 12, 13], "c": [7, 8, 9]}) + tm.assert_frame_equal(df2, expected) + + @pytest.mark.filterwarnings("ignore:Setting a value on a view:FutureWarning") + @pytest.mark.parametrize("has_ref", [True, False]) + def test_iloc_setitem_dictionary_value(self, has_ref): + # GH#37728 + df = DataFrame({"x": [1, 2], "y": [2, 2]}) + if has_ref: + view = df[:] + rhs = {"x": 9, "y": 99} + df.iloc[1] = rhs + expected = DataFrame({"x": [1, 9], "y": [2, 99]}) + tm.assert_frame_equal(df, expected) + + # GH#38335 same thing, mixed dtypes + df = DataFrame({"x": [1, 2], "y": [2.0, 2.0]}) + if has_ref: + view = df[:] # noqa: F841 + df.iloc[1] = rhs + expected = DataFrame({"x": [1, 9], "y": [2.0, 99.0]}) + tm.assert_frame_equal(df, expected) + + def test_iloc_getitem_float_duplicates(self): + df = DataFrame( + np.random.default_rng(2).standard_normal((3, 3)), + index=[0.1, 0.2, 0.2], + columns=list("abc"), + ) + expect = df.iloc[1:] + tm.assert_frame_equal(df.loc[0.2], expect) + + expect = df.iloc[1:, 0] + tm.assert_series_equal(df.loc[0.2, "a"], expect) + + df.index = [1, 0.2, 0.2] + expect = df.iloc[1:] + tm.assert_frame_equal(df.loc[0.2], expect) + + expect = df.iloc[1:, 0] + tm.assert_series_equal(df.loc[0.2, "a"], expect) + + df = DataFrame( + np.random.default_rng(2).standard_normal((4, 3)), + index=[1, 0.2, 0.2, 1], + columns=list("abc"), + ) + expect = df.iloc[1:-1] + tm.assert_frame_equal(df.loc[0.2], expect) + + expect = df.iloc[1:-1, 0] + tm.assert_series_equal(df.loc[0.2, "a"], expect) + + df.index = [0.1, 0.2, 2, 0.2] + expect = df.iloc[[1, -1]] + tm.assert_frame_equal(df.loc[0.2], expect) + + expect = df.iloc[[1, -1], 0] + tm.assert_series_equal(df.loc[0.2, "a"], expect) + + def test_iloc_setitem_custom_object(self): + # iloc with an object + class TO: + def __init__(self, value) -> None: + self.value = value + + def __str__(self) -> str: + return f"[{self.value}]" + + __repr__ = __str__ + + def __eq__(self, other) -> bool: + return self.value == other.value + + def view(self): + return self + + df = DataFrame(index=[0, 1], columns=[0]) + df.iloc[1, 0] = TO(1) + df.iloc[1, 0] = TO(2) + + result = DataFrame(index=[0, 1], columns=[0]) + result.iloc[1, 0] = TO(2) + + tm.assert_frame_equal(result, df) + + # remains object dtype even after setting it back + df = DataFrame(index=[0, 1], columns=[0]) + df.iloc[1, 0] = TO(1) + df.iloc[1, 0] = np.nan + result = DataFrame(index=[0, 1], columns=[0]) + + tm.assert_frame_equal(result, df) + + def test_iloc_getitem_with_duplicates(self): + df = DataFrame( + np.random.default_rng(2).random((3, 3)), + columns=list("ABC"), + index=list("aab"), + ) + + result = df.iloc[0] + assert isinstance(result, Series) + tm.assert_almost_equal(result.values, df.values[0]) + + result = df.T.iloc[:, 0] + assert isinstance(result, Series) + tm.assert_almost_equal(result.values, df.values[0]) + + def test_iloc_getitem_with_duplicates2(self): + # GH#2259 + df = DataFrame([[1, 2, 3], [4, 5, 6]], columns=[1, 1, 2]) + result = df.iloc[:, [0]] + expected = df.take([0], axis=1) + tm.assert_frame_equal(result, expected) + + def test_iloc_interval(self): + # GH#17130 + df = DataFrame({Interval(1, 2): [1, 2]}) + + result = df.iloc[0] + expected = Series({Interval(1, 2): 1}, name=0) + tm.assert_series_equal(result, expected) + + result = df.iloc[:, 0] + expected = Series([1, 2], name=Interval(1, 2)) + tm.assert_series_equal(result, expected) + + result = df.copy() + result.iloc[:, 0] += 1 + expected = DataFrame({Interval(1, 2): [2, 3]}) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("indexing_func", [list, np.array]) + @pytest.mark.parametrize("rhs_func", [list, np.array]) + def test_loc_setitem_boolean_list(self, rhs_func, indexing_func): + # GH#20438 testing specifically list key, not arraylike + ser = Series([0, 1, 2]) + ser.iloc[indexing_func([True, False, True])] = rhs_func([5, 10]) + expected = Series([5, 1, 10]) + tm.assert_series_equal(ser, expected) + + df = DataFrame({"a": [0, 1, 2]}) + df.iloc[indexing_func([True, False, True])] = rhs_func([[5], [10]]) + expected = DataFrame({"a": [5, 1, 10]}) + tm.assert_frame_equal(df, expected) + + def test_iloc_getitem_slice_negative_step_ea_block(self): + # GH#44551 + df = DataFrame({"A": [1, 2, 3]}, dtype="Int64") + + res = df.iloc[:, ::-1] + tm.assert_frame_equal(res, df) + + df["B"] = "foo" + res = df.iloc[:, ::-1] + expected = DataFrame({"B": df["B"], "A": df["A"]}) + tm.assert_frame_equal(res, expected) + + def test_iloc_setitem_2d_ndarray_into_ea_block(self): + # GH#44703 + df = DataFrame({"status": ["a", "b", "c"]}, dtype="category") + df.iloc[np.array([0, 1]), np.array([0])] = np.array([["a"], ["a"]]) + + expected = DataFrame({"status": ["a", "a", "c"]}, dtype=df["status"].dtype) + tm.assert_frame_equal(df, expected) + + @td.skip_array_manager_not_yet_implemented + def test_iloc_getitem_int_single_ea_block_view(self): + # GH#45241 + # TODO: make an extension interface test for this? + arr = interval_range(1, 10.0)._values + df = DataFrame(arr) + + # ser should be a *view* on the DataFrame data + ser = df.iloc[2] + + # if we have a view, then changing arr[2] should also change ser[0] + assert arr[2] != arr[-1] # otherwise the rest isn't meaningful + arr[2] = arr[-1] + assert ser[0] == arr[-1] + + def test_iloc_setitem_multicolumn_to_datetime(self, using_infer_string): + # GH#20511 + df = DataFrame({"A": ["2022-01-01", "2022-01-02"], "B": ["2021", "2022"]}) + + if using_infer_string: + with tm.assert_produces_warning( + FutureWarning, match="Setting an item of incompatible dtype" + ): + df.iloc[:, [0]] = DataFrame({"A": to_datetime(["2021", "2022"])}) + else: + df.iloc[:, [0]] = DataFrame({"A": to_datetime(["2021", "2022"])}) + expected = DataFrame( + { + "A": [ + Timestamp("2021-01-01 00:00:00"), + Timestamp("2022-01-01 00:00:00"), + ], + "B": ["2021", "2022"], + } + ) + tm.assert_frame_equal(df, expected, check_dtype=False) + + +class TestILocErrors: + # NB: this test should work for _any_ Series we can pass as + # series_with_simple_index + def test_iloc_float_raises( + self, series_with_simple_index, frame_or_series, warn_copy_on_write + ): + # GH#4892 + # float_indexers should raise exceptions + # on appropriate Index types & accessors + # this duplicates the code below + # but is specifically testing for the error + # message + + obj = series_with_simple_index + if frame_or_series is DataFrame: + obj = obj.to_frame() + + msg = "Cannot index by location index with a non-integer key" + with pytest.raises(TypeError, match=msg): + obj.iloc[3.0] + + with pytest.raises(IndexError, match=_slice_iloc_msg): + with tm.assert_cow_warning( + warn_copy_on_write and frame_or_series is DataFrame + ): + obj.iloc[3.0] = 0 + + @pytest.mark.filterwarnings("ignore:Setting a value on a view:FutureWarning") + @pytest.mark.parametrize("has_ref", [True, False]) + def test_iloc_getitem_setitem_fancy_exceptions(self, float_frame, has_ref): + with pytest.raises(IndexingError, match="Too many indexers"): + float_frame.iloc[:, :, :] + + if has_ref: + view = float_frame[:] # noqa: F841 + with pytest.raises(IndexError, match="too many indices for array"): + # GH#32257 we let numpy do validation, get their exception + float_frame.iloc[:, :, :] = 1 + + def test_iloc_frame_indexer(self): + # GH#39004 + df = DataFrame({"a": [1, 2, 3]}) + indexer = DataFrame({"a": [True, False, True]}) + msg = "DataFrame indexer for .iloc is not supported. Consider using .loc" + with pytest.raises(TypeError, match=msg): + df.iloc[indexer] = 1 + + msg = ( + "DataFrame indexer is not allowed for .iloc\n" + "Consider using .loc for automatic alignment." + ) + with pytest.raises(IndexError, match=msg): + df.iloc[indexer] + + +class TestILocSetItemDuplicateColumns: + def test_iloc_setitem_scalar_duplicate_columns(self): + # GH#15686, duplicate columns and mixed dtype + df1 = DataFrame([{"A": None, "B": 1}, {"A": 2, "B": 2}]) + df2 = DataFrame([{"A": 3, "B": 3}, {"A": 4, "B": 4}]) + df = concat([df1, df2], axis=1) + df.iloc[0, 0] = -1 + + assert df.iloc[0, 0] == -1 + assert df.iloc[0, 2] == 3 + assert df.dtypes.iloc[2] == np.int64 + + def test_iloc_setitem_list_duplicate_columns(self): + # GH#22036 setting with same-sized list + df = DataFrame([[0, "str", "str2"]], columns=["a", "b", "b"]) + + df.iloc[:, 2] = ["str3"] + + expected = DataFrame([[0, "str", "str3"]], columns=["a", "b", "b"]) + tm.assert_frame_equal(df, expected) + + def test_iloc_setitem_series_duplicate_columns(self): + df = DataFrame( + np.arange(8, dtype=np.int64).reshape(2, 4), columns=["A", "B", "A", "B"] + ) + df.iloc[:, 0] = df.iloc[:, 0].astype(np.float64) + assert df.dtypes.iloc[2] == np.int64 + + @pytest.mark.parametrize( + ["dtypes", "init_value", "expected_value"], + [("int64", "0", 0), ("float", "1.2", 1.2)], + ) + def test_iloc_setitem_dtypes_duplicate_columns( + self, dtypes, init_value, expected_value + ): + # GH#22035 + df = DataFrame( + [[init_value, "str", "str2"]], columns=["a", "b", "b"], dtype=object + ) + + # with the enforcement of GH#45333 in 2.0, this sets values inplace, + # so we retain object dtype + df.iloc[:, 0] = df.iloc[:, 0].astype(dtypes) + + expected_df = DataFrame( + [[expected_value, "str", "str2"]], + columns=["a", "b", "b"], + dtype=object, + ) + tm.assert_frame_equal(df, expected_df) + + +class TestILocCallable: + def test_frame_iloc_getitem_callable(self): + # GH#11485 + df = DataFrame({"X": [1, 2, 3, 4], "Y": list("aabb")}, index=list("ABCD")) + + # return location + res = df.iloc[lambda x: [1, 3]] + tm.assert_frame_equal(res, df.iloc[[1, 3]]) + + res = df.iloc[lambda x: [1, 3], :] + tm.assert_frame_equal(res, df.iloc[[1, 3], :]) + + res = df.iloc[lambda x: [1, 3], lambda x: 0] + tm.assert_series_equal(res, df.iloc[[1, 3], 0]) + + res = df.iloc[lambda x: [1, 3], lambda x: [0]] + tm.assert_frame_equal(res, df.iloc[[1, 3], [0]]) + + # mixture + res = df.iloc[[1, 3], lambda x: 0] + tm.assert_series_equal(res, df.iloc[[1, 3], 0]) + + res = df.iloc[[1, 3], lambda x: [0]] + tm.assert_frame_equal(res, df.iloc[[1, 3], [0]]) + + res = df.iloc[lambda x: [1, 3], 0] + tm.assert_series_equal(res, df.iloc[[1, 3], 0]) + + res = df.iloc[lambda x: [1, 3], [0]] + tm.assert_frame_equal(res, df.iloc[[1, 3], [0]]) + + def test_frame_iloc_setitem_callable(self): + # GH#11485 + df = DataFrame( + {"X": [1, 2, 3, 4], "Y": Series(list("aabb"), dtype=object)}, + index=list("ABCD"), + ) + + # return location + res = df.copy() + res.iloc[lambda x: [1, 3]] = 0 + exp = df.copy() + exp.iloc[[1, 3]] = 0 + tm.assert_frame_equal(res, exp) + + res = df.copy() + res.iloc[lambda x: [1, 3], :] = -1 + exp = df.copy() + exp.iloc[[1, 3], :] = -1 + tm.assert_frame_equal(res, exp) + + res = df.copy() + res.iloc[lambda x: [1, 3], lambda x: 0] = 5 + exp = df.copy() + exp.iloc[[1, 3], 0] = 5 + tm.assert_frame_equal(res, exp) + + res = df.copy() + res.iloc[lambda x: [1, 3], lambda x: [0]] = 25 + exp = df.copy() + exp.iloc[[1, 3], [0]] = 25 + tm.assert_frame_equal(res, exp) + + # mixture + res = df.copy() + res.iloc[[1, 3], lambda x: 0] = -3 + exp = df.copy() + exp.iloc[[1, 3], 0] = -3 + tm.assert_frame_equal(res, exp) + + res = df.copy() + res.iloc[[1, 3], lambda x: [0]] = -5 + exp = df.copy() + exp.iloc[[1, 3], [0]] = -5 + tm.assert_frame_equal(res, exp) + + res = df.copy() + res.iloc[lambda x: [1, 3], 0] = 10 + exp = df.copy() + exp.iloc[[1, 3], 0] = 10 + tm.assert_frame_equal(res, exp) + + res = df.copy() + res.iloc[lambda x: [1, 3], [0]] = [-5, -5] + exp = df.copy() + exp.iloc[[1, 3], [0]] = [-5, -5] + tm.assert_frame_equal(res, exp) + + +class TestILocSeries: + def test_iloc(self, using_copy_on_write, warn_copy_on_write): + ser = Series( + np.random.default_rng(2).standard_normal(10), index=list(range(0, 20, 2)) + ) + ser_original = ser.copy() + + for i in range(len(ser)): + result = ser.iloc[i] + exp = ser[ser.index[i]] + tm.assert_almost_equal(result, exp) + + # pass a slice + result = ser.iloc[slice(1, 3)] + expected = ser.loc[2:4] + tm.assert_series_equal(result, expected) + + # test slice is a view + with tm.assert_produces_warning(None): + # GH#45324 make sure we aren't giving a spurious FutureWarning + with tm.assert_cow_warning(warn_copy_on_write): + result[:] = 0 + if using_copy_on_write: + tm.assert_series_equal(ser, ser_original) + else: + assert (ser.iloc[1:3] == 0).all() + + # list of integers + result = ser.iloc[[0, 2, 3, 4, 5]] + expected = ser.reindex(ser.index[[0, 2, 3, 4, 5]]) + tm.assert_series_equal(result, expected) + + def test_iloc_getitem_nonunique(self): + ser = Series([0, 1, 2], index=[0, 1, 0]) + assert ser.iloc[2] == 2 + + def test_iloc_setitem_pure_position_based(self): + # GH#22046 + ser1 = Series([1, 2, 3]) + ser2 = Series([4, 5, 6], index=[1, 0, 2]) + ser1.iloc[1:3] = ser2.iloc[1:3] + expected = Series([1, 5, 6]) + tm.assert_series_equal(ser1, expected) + + def test_iloc_nullable_int64_size_1_nan(self): + # GH 31861 + result = DataFrame({"a": ["test"], "b": [np.nan]}) + with tm.assert_produces_warning(FutureWarning, match="incompatible dtype"): + result.loc[:, "b"] = result.loc[:, "b"].astype("Int64") + expected = DataFrame({"a": ["test"], "b": array([NA], dtype="Int64")}) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_indexers.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_indexers.py new file mode 100644 index 0000000000000000000000000000000000000000..ddc5c039160d5ada6c6dccb62514590a4ce9f620 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_indexers.py @@ -0,0 +1,61 @@ +# Tests aimed at pandas.core.indexers +import numpy as np +import pytest + +from pandas.core.indexers import ( + is_scalar_indexer, + length_of_indexer, + validate_indices, +) + + +def test_length_of_indexer(): + arr = np.zeros(4, dtype=bool) + arr[0] = 1 + result = length_of_indexer(arr) + assert result == 1 + + +def test_is_scalar_indexer(): + indexer = (0, 1) + assert is_scalar_indexer(indexer, 2) + assert not is_scalar_indexer(indexer[0], 2) + + indexer = (np.array([2]), 1) + assert not is_scalar_indexer(indexer, 2) + + indexer = (np.array([2]), np.array([3])) + assert not is_scalar_indexer(indexer, 2) + + indexer = (np.array([2]), np.array([3, 4])) + assert not is_scalar_indexer(indexer, 2) + + assert not is_scalar_indexer(slice(None), 1) + + indexer = 0 + assert is_scalar_indexer(indexer, 1) + + indexer = (0,) + assert is_scalar_indexer(indexer, 1) + + +class TestValidateIndices: + def test_validate_indices_ok(self): + indices = np.asarray([0, 1]) + validate_indices(indices, 2) + validate_indices(indices[:0], 0) + validate_indices(np.array([-1, -1]), 0) + + def test_validate_indices_low(self): + indices = np.asarray([0, -2]) + with pytest.raises(ValueError, match="'indices' contains"): + validate_indices(indices, 2) + + def test_validate_indices_high(self): + indices = np.asarray([0, 1, 2]) + with pytest.raises(IndexError, match="indices are out"): + validate_indices(indices, 2) + + def test_validate_indices_empty(self): + with pytest.raises(IndexError, match="indices are out"): + validate_indices(np.array([0, 1]), 0) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_indexing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_indexing.py new file mode 100644 index 0000000000000000000000000000000000000000..07275302dcf9fd164490b043d698fcb805989227 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_indexing.py @@ -0,0 +1,1157 @@ +""" test fancy indexing & misc """ + +import array +from datetime import datetime +import re +import weakref + +import numpy as np +import pytest + +from pandas.errors import IndexingError + +from pandas.core.dtypes.common import ( + is_float_dtype, + is_integer_dtype, + is_object_dtype, +) + +import pandas as pd +from pandas import ( + DataFrame, + Index, + NaT, + Series, + date_range, + offsets, + timedelta_range, +) +import pandas._testing as tm +from pandas.tests.indexing.common import _mklbl +from pandas.tests.indexing.test_floats import gen_obj + +# ------------------------------------------------------------------------ +# Indexing test cases + + +class TestFancy: + """pure get/set item & fancy indexing""" + + def test_setitem_ndarray_1d(self): + # GH5508 + + # len of indexer vs length of the 1d ndarray + df = DataFrame(index=Index(np.arange(1, 11), dtype=np.int64)) + df["foo"] = np.zeros(10, dtype=np.float64) + df["bar"] = np.zeros(10, dtype=complex) + + # invalid + msg = "Must have equal len keys and value when setting with an iterable" + with pytest.raises(ValueError, match=msg): + df.loc[df.index[2:5], "bar"] = np.array([2.33j, 1.23 + 0.1j, 2.2, 1.0]) + + # valid + df.loc[df.index[2:6], "bar"] = np.array([2.33j, 1.23 + 0.1j, 2.2, 1.0]) + + result = df.loc[df.index[2:6], "bar"] + expected = Series( + [2.33j, 1.23 + 0.1j, 2.2, 1.0], index=[3, 4, 5, 6], name="bar" + ) + tm.assert_series_equal(result, expected) + + def test_setitem_ndarray_1d_2(self): + # GH5508 + + # dtype getting changed? + df = DataFrame(index=Index(np.arange(1, 11))) + df["foo"] = np.zeros(10, dtype=np.float64) + df["bar"] = np.zeros(10, dtype=complex) + + msg = "Must have equal len keys and value when setting with an iterable" + with pytest.raises(ValueError, match=msg): + df[2:5] = np.arange(1, 4) * 1j + + @pytest.mark.filterwarnings( + "ignore:Series.__getitem__ treating keys as positions is deprecated:" + "FutureWarning" + ) + def test_getitem_ndarray_3d( + self, index, frame_or_series, indexer_sli, using_array_manager + ): + # GH 25567 + obj = gen_obj(frame_or_series, index) + idxr = indexer_sli(obj) + nd3 = np.random.default_rng(2).integers(5, size=(2, 2, 2)) + + msgs = [] + if frame_or_series is Series and indexer_sli in [tm.setitem, tm.iloc]: + msgs.append(r"Wrong number of dimensions. values.ndim > ndim \[3 > 1\]") + if using_array_manager: + msgs.append("Passed array should be 1-dimensional") + if frame_or_series is Series or indexer_sli is tm.iloc: + msgs.append(r"Buffer has wrong number of dimensions \(expected 1, got 3\)") + if using_array_manager: + msgs.append("indexer should be 1-dimensional") + if indexer_sli is tm.loc or ( + frame_or_series is Series and indexer_sli is tm.setitem + ): + msgs.append("Cannot index with multidimensional key") + if frame_or_series is DataFrame and indexer_sli is tm.setitem: + msgs.append("Index data must be 1-dimensional") + if isinstance(index, pd.IntervalIndex) and indexer_sli is tm.iloc: + msgs.append("Index data must be 1-dimensional") + if isinstance(index, (pd.TimedeltaIndex, pd.DatetimeIndex, pd.PeriodIndex)): + msgs.append("Data must be 1-dimensional") + if len(index) == 0 or isinstance(index, pd.MultiIndex): + msgs.append("positional indexers are out-of-bounds") + if type(index) is Index and not isinstance(index._values, np.ndarray): + # e.g. Int64 + msgs.append("values must be a 1D array") + + # string[pyarrow] + msgs.append("only handle 1-dimensional arrays") + + msg = "|".join(msgs) + + potential_errors = (IndexError, ValueError, NotImplementedError) + with pytest.raises(potential_errors, match=msg): + idxr[nd3] + + @pytest.mark.filterwarnings( + "ignore:Series.__setitem__ treating keys as positions is deprecated:" + "FutureWarning" + ) + def test_setitem_ndarray_3d(self, index, frame_or_series, indexer_sli): + # GH 25567 + obj = gen_obj(frame_or_series, index) + idxr = indexer_sli(obj) + nd3 = np.random.default_rng(2).integers(5, size=(2, 2, 2)) + + if indexer_sli is tm.iloc: + err = ValueError + msg = f"Cannot set values with ndim > {obj.ndim}" + else: + err = ValueError + msg = "|".join( + [ + r"Buffer has wrong number of dimensions \(expected 1, got 3\)", + "Cannot set values with ndim > 1", + "Index data must be 1-dimensional", + "Data must be 1-dimensional", + "Array conditional must be same shape as self", + ] + ) + + with pytest.raises(err, match=msg): + idxr[nd3] = 0 + + def test_getitem_ndarray_0d(self): + # GH#24924 + key = np.array(0) + + # dataframe __getitem__ + df = DataFrame([[1, 2], [3, 4]]) + result = df[key] + expected = Series([1, 3], name=0) + tm.assert_series_equal(result, expected) + + # series __getitem__ + ser = Series([1, 2]) + result = ser[key] + assert result == 1 + + def test_inf_upcast(self): + # GH 16957 + # We should be able to use np.inf as a key + # np.inf should cause an index to convert to float + + # Test with np.inf in rows + df = DataFrame(columns=[0]) + df.loc[1] = 1 + df.loc[2] = 2 + df.loc[np.inf] = 3 + + # make sure we can look up the value + assert df.loc[np.inf, 0] == 3 + + result = df.index + expected = Index([1, 2, np.inf], dtype=np.float64) + tm.assert_index_equal(result, expected) + + def test_setitem_dtype_upcast(self): + # GH3216 + df = DataFrame([{"a": 1}, {"a": 3, "b": 2}]) + df["c"] = np.nan + assert df["c"].dtype == np.float64 + + with tm.assert_produces_warning( + FutureWarning, match="item of incompatible dtype" + ): + df.loc[0, "c"] = "foo" + expected = DataFrame( + {"a": [1, 3], "b": [np.nan, 2], "c": Series(["foo", np.nan], dtype=object)} + ) + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize("val", [3.14, "wxyz"]) + def test_setitem_dtype_upcast2(self, val): + # GH10280 + df = DataFrame( + np.arange(6, dtype="int64").reshape(2, 3), + index=list("ab"), + columns=["foo", "bar", "baz"], + ) + + left = df.copy() + with tm.assert_produces_warning( + FutureWarning, match="item of incompatible dtype" + ): + left.loc["a", "bar"] = val + right = DataFrame( + [[0, val, 2], [3, 4, 5]], + index=list("ab"), + columns=["foo", "bar", "baz"], + ) + + tm.assert_frame_equal(left, right) + assert is_integer_dtype(left["foo"]) + assert is_integer_dtype(left["baz"]) + + def test_setitem_dtype_upcast3(self): + left = DataFrame( + np.arange(6, dtype="int64").reshape(2, 3) / 10.0, + index=list("ab"), + columns=["foo", "bar", "baz"], + ) + with tm.assert_produces_warning( + FutureWarning, match="item of incompatible dtype" + ): + left.loc["a", "bar"] = "wxyz" + + right = DataFrame( + [[0, "wxyz", 0.2], [0.3, 0.4, 0.5]], + index=list("ab"), + columns=["foo", "bar", "baz"], + ) + + tm.assert_frame_equal(left, right) + assert is_float_dtype(left["foo"]) + assert is_float_dtype(left["baz"]) + + def test_dups_fancy_indexing(self): + # GH 3455 + + df = DataFrame(np.eye(3), columns=["a", "a", "b"]) + result = df[["b", "a"]].columns + expected = Index(["b", "a", "a"]) + tm.assert_index_equal(result, expected) + + def test_dups_fancy_indexing_across_dtypes(self): + # across dtypes + df = DataFrame([[1, 2, 1.0, 2.0, 3.0, "foo", "bar"]], columns=list("aaaaaaa")) + result = DataFrame([[1, 2, 1.0, 2.0, 3.0, "foo", "bar"]]) + result.columns = list("aaaaaaa") # GH#3468 + + # GH#3509 smoke tests for indexing with duplicate columns + df.iloc[:, 4] + result.iloc[:, 4] + + tm.assert_frame_equal(df, result) + + def test_dups_fancy_indexing_not_in_order(self): + # GH 3561, dups not in selected order + df = DataFrame( + {"test": [5, 7, 9, 11], "test1": [4.0, 5, 6, 7], "other": list("abcd")}, + index=["A", "A", "B", "C"], + ) + rows = ["C", "B"] + expected = DataFrame( + {"test": [11, 9], "test1": [7.0, 6], "other": ["d", "c"]}, index=rows + ) + result = df.loc[rows] + tm.assert_frame_equal(result, expected) + + result = df.loc[Index(rows)] + tm.assert_frame_equal(result, expected) + + rows = ["C", "B", "E"] + with pytest.raises(KeyError, match="not in index"): + df.loc[rows] + + # see GH5553, make sure we use the right indexer + rows = ["F", "G", "H", "C", "B", "E"] + with pytest.raises(KeyError, match="not in index"): + df.loc[rows] + + def test_dups_fancy_indexing_only_missing_label(self, using_infer_string): + # List containing only missing label + dfnu = DataFrame( + np.random.default_rng(2).standard_normal((5, 3)), index=list("AABCD") + ) + if using_infer_string: + with pytest.raises( + KeyError, + match=re.escape( + "\"None of [Index(['E'], dtype='str')] are in the [index]\"" + ), + ): + dfnu.loc[["E"]] + else: + with pytest.raises( + KeyError, + match=re.escape( + "\"None of [Index(['E'], dtype='object')] are in the [index]\"" + ), + ): + dfnu.loc[["E"]] + + @pytest.mark.parametrize("vals", [[0, 1, 2], list("abc")]) + def test_dups_fancy_indexing_missing_label(self, vals): + # GH 4619; duplicate indexer with missing label + df = DataFrame({"A": vals}) + with pytest.raises(KeyError, match="not in index"): + df.loc[[0, 8, 0]] + + def test_dups_fancy_indexing_non_unique(self): + # non unique with non unique selector + df = DataFrame({"test": [5, 7, 9, 11]}, index=["A", "A", "B", "C"]) + with pytest.raises(KeyError, match="not in index"): + df.loc[["A", "A", "E"]] + + def test_dups_fancy_indexing2(self): + # GH 5835 + # dups on index and missing values + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 5)), + columns=["A", "B", "B", "B", "A"], + ) + + with pytest.raises(KeyError, match="not in index"): + df.loc[:, ["A", "B", "C"]] + + def test_dups_fancy_indexing3(self): + # GH 6504, multi-axis indexing + df = DataFrame( + np.random.default_rng(2).standard_normal((9, 2)), + index=[1, 1, 1, 2, 2, 2, 3, 3, 3], + columns=["a", "b"], + ) + + expected = df.iloc[0:6] + result = df.loc[[1, 2]] + tm.assert_frame_equal(result, expected) + + expected = df + result = df.loc[:, ["a", "b"]] + tm.assert_frame_equal(result, expected) + + expected = df.iloc[0:6, :] + result = df.loc[[1, 2], ["a", "b"]] + tm.assert_frame_equal(result, expected) + + def test_duplicate_int_indexing(self, indexer_sl): + # GH 17347 + ser = Series(range(3), index=[1, 1, 3]) + expected = Series(range(2), index=[1, 1]) + result = indexer_sl(ser)[[1]] + tm.assert_series_equal(result, expected) + + def test_indexing_mixed_frame_bug(self): + # GH3492 + df = DataFrame( + {"a": {1: "aaa", 2: "bbb", 3: "ccc"}, "b": {1: 111, 2: 222, 3: 333}} + ) + + # this works, new column is created correctly + df["test"] = df["a"].apply(lambda x: "_" if x == "aaa" else x) + + # this does not work, ie column test is not changed + idx = df["test"] == "_" + temp = df.loc[idx, "a"].apply(lambda x: "-----" if x == "aaa" else x) + df.loc[idx, "test"] = temp + assert df.iloc[0, 2] == "-----" + + def test_multitype_list_index_access(self): + # GH 10610 + df = DataFrame( + np.random.default_rng(2).random((10, 5)), columns=["a"] + [20, 21, 22, 23] + ) + + with pytest.raises(KeyError, match=re.escape("'[26, -8] not in index'")): + df[[22, 26, -8]] + assert df[21].shape[0] == df.shape[0] + + def test_set_index_nan(self): + # GH 3586 + df = DataFrame( + { + "PRuid": { + 17: "nonQC", + 18: "nonQC", + 19: "nonQC", + 20: "10", + 21: "11", + 22: "12", + 23: "13", + 24: "24", + 25: "35", + 26: "46", + 27: "47", + 28: "48", + 29: "59", + 30: "10", + }, + "QC": { + 17: 0.0, + 18: 0.0, + 19: 0.0, + 20: np.nan, + 21: np.nan, + 22: np.nan, + 23: np.nan, + 24: 1.0, + 25: np.nan, + 26: np.nan, + 27: np.nan, + 28: np.nan, + 29: np.nan, + 30: np.nan, + }, + "data": { + 17: 7.9544899999999998, + 18: 8.0142609999999994, + 19: 7.8591520000000008, + 20: 0.86140349999999999, + 21: 0.87853110000000001, + 22: 0.8427041999999999, + 23: 0.78587700000000005, + 24: 0.73062459999999996, + 25: 0.81668560000000001, + 26: 0.81927080000000008, + 27: 0.80705009999999999, + 28: 0.81440240000000008, + 29: 0.80140849999999997, + 30: 0.81307740000000006, + }, + "year": { + 17: 2006, + 18: 2007, + 19: 2008, + 20: 1985, + 21: 1985, + 22: 1985, + 23: 1985, + 24: 1985, + 25: 1985, + 26: 1985, + 27: 1985, + 28: 1985, + 29: 1985, + 30: 1986, + }, + } + ).reset_index() + + result = ( + df.set_index(["year", "PRuid", "QC"]) + .reset_index() + .reindex(columns=df.columns) + ) + tm.assert_frame_equal(result, df) + + def test_multi_assign(self): + # GH 3626, an assignment of a sub-df to a df + # set float64 to avoid upcast when setting nan + df = DataFrame( + { + "FC": ["a", "b", "a", "b", "a", "b"], + "PF": [0, 0, 0, 0, 1, 1], + "col1": list(range(6)), + "col2": list(range(6, 12)), + } + ).astype({"col2": "float64"}) + df.iloc[1, 0] = np.nan + df2 = df.copy() + + mask = ~df2.FC.isna() + cols = ["col1", "col2"] + + dft = df2 * 2 + dft.iloc[3, 3] = np.nan + + expected = DataFrame( + { + "FC": ["a", np.nan, "a", "b", "a", "b"], + "PF": [0, 0, 0, 0, 1, 1], + "col1": Series([0, 1, 4, 6, 8, 10]), + "col2": [12, 7, 16, np.nan, 20, 22], + } + ) + + # frame on rhs + df2.loc[mask, cols] = dft.loc[mask, cols] + tm.assert_frame_equal(df2, expected) + + # with an ndarray on rhs + # coerces to float64 because values has float64 dtype + # GH 14001 + expected = DataFrame( + { + "FC": ["a", np.nan, "a", "b", "a", "b"], + "PF": [0, 0, 0, 0, 1, 1], + "col1": [0, 1, 4, 6, 8, 10], + "col2": [12, 7, 16, np.nan, 20, 22], + } + ) + df2 = df.copy() + df2.loc[mask, cols] = dft.loc[mask, cols].values + tm.assert_frame_equal(df2, expected) + + def test_multi_assign_broadcasting_rhs(self): + # broadcasting on the rhs is required + df = DataFrame( + { + "A": [1, 2, 0, 0, 0], + "B": [0, 0, 0, 10, 11], + "C": [0, 0, 0, 10, 11], + "D": [3, 4, 5, 6, 7], + } + ) + + expected = df.copy() + mask = expected["A"] == 0 + for col in ["A", "B"]: + expected.loc[mask, col] = df["D"] + + df.loc[df["A"] == 0, ["A", "B"]] = df["D"].copy() + tm.assert_frame_equal(df, expected) + + def test_setitem_list(self): + # GH 6043 + # iloc with a list + df = DataFrame(index=[0, 1], columns=[0]) + df.iloc[1, 0] = [1, 2, 3] + df.iloc[1, 0] = [1, 2] + + result = DataFrame(index=[0, 1], columns=[0]) + result.iloc[1, 0] = [1, 2] + + tm.assert_frame_equal(result, df) + + def test_string_slice(self): + # GH 14424 + # string indexing against datetimelike with object + # dtype should properly raises KeyError + df = DataFrame([1], Index([pd.Timestamp("2011-01-01")], dtype=object)) + assert df.index._is_all_dates + with pytest.raises(KeyError, match="'2011'"): + df["2011"] + + with pytest.raises(KeyError, match="'2011'"): + df.loc["2011", 0] + + def test_string_slice_empty(self): + # GH 14424 + + df = DataFrame() + assert not df.index._is_all_dates + with pytest.raises(KeyError, match="'2011'"): + df["2011"] + + with pytest.raises(KeyError, match="^0$"): + df.loc["2011", 0] + + def test_astype_assignment(self, using_infer_string): + # GH4312 (iloc) + df_orig = DataFrame( + [["1", "2", "3", ".4", 5, 6.0, "foo"]], columns=list("ABCDEFG") + ) + df_orig[list("ABCDG")] = df_orig[list("ABCDG")].astype(object) + + df = df_orig.copy() + + # with the enforcement of GH#45333 in 2.0, this setting is attempted inplace, + # so object dtype is retained + df.iloc[:, 0:2] = df.iloc[:, 0:2].astype(np.int64) + expected = DataFrame( + [[1, 2, "3", ".4", 5, 6.0, "foo"]], columns=list("ABCDEFG") + ) + expected[list("CDG")] = expected[list("CDG")].astype(object) + expected["A"] = expected["A"].astype(object) + expected["B"] = expected["B"].astype(object) + tm.assert_frame_equal(df, expected) + + # GH5702 (loc) + df = df_orig.copy() + df.loc[:, "A"] = df.loc[:, "A"].astype(np.int64) + expected = DataFrame( + [[1, "2", "3", ".4", 5, 6.0, "foo"]], columns=list("ABCDEFG") + ) + expected[list("ABCDG")] = expected[list("ABCDG")].astype(object) + tm.assert_frame_equal(df, expected) + + df = df_orig.copy() + + df.loc[:, ["B", "C"]] = df.loc[:, ["B", "C"]].astype(np.int64) + expected = DataFrame( + [["1", 2, 3, ".4", 5, 6.0, "foo"]], columns=list("ABCDEFG") + ) + expected[list("ABCDG")] = expected[list("ABCDG")].astype(object) + tm.assert_frame_equal(df, expected) + + def test_astype_assignment_full_replacements(self): + # full replacements / no nans + df = DataFrame({"A": [1.0, 2.0, 3.0, 4.0]}) + + # With the enforcement of GH#45333 in 2.0, this assignment occurs inplace, + # so float64 is retained + df.iloc[:, 0] = df["A"].astype(np.int64) + expected = DataFrame({"A": [1.0, 2.0, 3.0, 4.0]}) + tm.assert_frame_equal(df, expected) + + df = DataFrame({"A": [1.0, 2.0, 3.0, 4.0]}) + df.loc[:, "A"] = df["A"].astype(np.int64) + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize("indexer", [tm.getitem, tm.loc]) + def test_index_type_coercion(self, indexer): + # GH 11836 + # if we have an index type and set it with something that looks + # to numpy like the same, but is actually, not + # (e.g. setting with a float or string '0') + # then we need to coerce to object + + # integer indexes + for s in [Series(range(5)), Series(range(5), index=range(1, 6))]: + assert is_integer_dtype(s.index) + + s2 = s.copy() + indexer(s2)[0.1] = 0 + assert is_float_dtype(s2.index) + assert indexer(s2)[0.1] == 0 + + s2 = s.copy() + indexer(s2)[0.0] = 0 + exp = s.index + if 0 not in s: + exp = Index(s.index.tolist() + [0]) + tm.assert_index_equal(s2.index, exp) + + s2 = s.copy() + indexer(s2)["0"] = 0 + assert is_object_dtype(s2.index) + + for s in [Series(range(5), index=np.arange(5.0))]: + assert is_float_dtype(s.index) + + s2 = s.copy() + indexer(s2)[0.1] = 0 + assert is_float_dtype(s2.index) + assert indexer(s2)[0.1] == 0 + + s2 = s.copy() + indexer(s2)[0.0] = 0 + tm.assert_index_equal(s2.index, s.index) + + s2 = s.copy() + indexer(s2)["0"] = 0 + assert is_object_dtype(s2.index) + + +class TestMisc: + def test_float_index_to_mixed(self): + df = DataFrame( + { + 0.0: np.random.default_rng(2).random(10), + 1.0: np.random.default_rng(2).random(10), + } + ) + df["a"] = 10 + + expected = DataFrame({0.0: df[0.0], 1.0: df[1.0], "a": [10] * 10}) + tm.assert_frame_equal(expected, df) + + def test_float_index_non_scalar_assignment(self): + df = DataFrame({"a": [1, 2, 3], "b": [3, 4, 5]}, index=[1.0, 2.0, 3.0]) + df.loc[df.index[:2]] = 1 + expected = DataFrame({"a": [1, 1, 3], "b": [1, 1, 5]}, index=df.index) + tm.assert_frame_equal(expected, df) + + def test_loc_setitem_fullindex_views(self): + df = DataFrame({"a": [1, 2, 3], "b": [3, 4, 5]}, index=[1.0, 2.0, 3.0]) + df2 = df.copy() + df.loc[df.index] = df.loc[df.index] + tm.assert_frame_equal(df, df2) + + def test_rhs_alignment(self, using_infer_string): + # GH8258, tests that both rows & columns are aligned to what is + # assigned to. covers both uniform data-type & multi-type cases + def run_tests(df, rhs, right_loc, right_iloc): + # label, index, slice + lbl_one, idx_one, slice_one = list("bcd"), [1, 2, 3], slice(1, 4) + lbl_two, idx_two, slice_two = ["joe", "jolie"], [1, 2], slice(1, 3) + + left = df.copy() + left.loc[lbl_one, lbl_two] = rhs + tm.assert_frame_equal(left, right_loc) + + left = df.copy() + left.iloc[idx_one, idx_two] = rhs + tm.assert_frame_equal(left, right_iloc) + + left = df.copy() + left.iloc[slice_one, slice_two] = rhs + tm.assert_frame_equal(left, right_iloc) + + xs = np.arange(20).reshape(5, 4) + cols = ["jim", "joe", "jolie", "joline"] + df = DataFrame(xs, columns=cols, index=list("abcde"), dtype="int64") + + # right hand side; permute the indices and multiplpy by -2 + rhs = -2 * df.iloc[3:0:-1, 2:0:-1] + + # expected `right` result; just multiply by -2 + right_iloc = df.copy() + right_iloc["joe"] = [1, 14, 10, 6, 17] + right_iloc["jolie"] = [2, 13, 9, 5, 18] + right_iloc.iloc[1:4, 1:3] *= -2 + right_loc = df.copy() + right_loc.iloc[1:4, 1:3] *= -2 + + # run tests with uniform dtypes + run_tests(df, rhs, right_loc, right_iloc) + + # make frames multi-type & re-run tests + for frame in [df, rhs, right_loc, right_iloc]: + frame["joe"] = frame["joe"].astype("float64") + frame["jolie"] = frame["jolie"].map(lambda x: f"@{x}") + right_iloc["joe"] = [1.0, "@-28", "@-20", "@-12", 17.0] + right_iloc["jolie"] = ["@2", -26.0, -18.0, -10.0, "@18"] + if using_infer_string: + with pytest.raises(TypeError, match="Invalid value"): + with tm.assert_produces_warning( + FutureWarning, match="incompatible dtype" + ): + run_tests(df, rhs, right_loc, right_iloc) + else: + with tm.assert_produces_warning(FutureWarning, match="incompatible dtype"): + run_tests(df, rhs, right_loc, right_iloc) + + @pytest.mark.parametrize( + "idx", [_mklbl("A", 20), np.arange(20) + 100, np.linspace(100, 150, 20)] + ) + def test_str_label_slicing_with_negative_step(self, idx): + SLC = pd.IndexSlice + + idx = Index(idx) + ser = Series(np.arange(20), index=idx) + tm.assert_indexing_slices_equivalent(ser, SLC[idx[9] :: -1], SLC[9::-1]) + tm.assert_indexing_slices_equivalent(ser, SLC[: idx[9] : -1], SLC[:8:-1]) + tm.assert_indexing_slices_equivalent( + ser, SLC[idx[13] : idx[9] : -1], SLC[13:8:-1] + ) + tm.assert_indexing_slices_equivalent(ser, SLC[idx[9] : idx[13] : -1], SLC[:0]) + + def test_slice_with_zero_step_raises(self, index, indexer_sl, frame_or_series): + obj = frame_or_series(np.arange(len(index)), index=index) + with pytest.raises(ValueError, match="slice step cannot be zero"): + indexer_sl(obj)[::0] + + def test_loc_setitem_indexing_assignment_dict_already_exists(self): + index = Index([-5, 0, 5], name="z") + df = DataFrame({"x": [1, 2, 6], "y": [2, 2, 8]}, index=index) + expected = df.copy() + rhs = {"x": 9, "y": 99} + df.loc[5] = rhs + expected.loc[5] = [9, 99] + tm.assert_frame_equal(df, expected) + + # GH#38335 same thing, mixed dtypes + df = DataFrame({"x": [1, 2, 6], "y": [2.0, 2.0, 8.0]}, index=index) + df.loc[5] = rhs + expected = DataFrame({"x": [1, 2, 9], "y": [2.0, 2.0, 99.0]}, index=index) + tm.assert_frame_equal(df, expected) + + def test_iloc_getitem_indexing_dtypes_on_empty(self): + # Check that .iloc returns correct dtypes GH9983 + df = DataFrame({"a": [1, 2, 3], "b": ["b", "b2", "b3"]}) + df2 = df.iloc[[], :] + + assert df2.loc[:, "a"].dtype == np.int64 + tm.assert_series_equal(df2.loc[:, "a"], df2.iloc[:, 0]) + + @pytest.mark.parametrize("size", [5, 999999, 1000000]) + def test_loc_range_in_series_indexing(self, size): + # range can cause an indexing error + # GH 11652 + s = Series(index=range(size), dtype=np.float64) + s.loc[range(1)] = 42 + tm.assert_series_equal(s.loc[range(1)], Series(42.0, index=[0])) + + s.loc[range(2)] = 43 + tm.assert_series_equal(s.loc[range(2)], Series(43.0, index=[0, 1])) + + def test_partial_boolean_frame_indexing(self): + # GH 17170 + df = DataFrame( + np.arange(9.0).reshape(3, 3), index=list("abc"), columns=list("ABC") + ) + index_df = DataFrame(1, index=list("ab"), columns=list("AB")) + result = df[index_df.notnull()] + expected = DataFrame( + np.array([[0.0, 1.0, np.nan], [3.0, 4.0, np.nan], [np.nan] * 3]), + index=list("abc"), + columns=list("ABC"), + ) + tm.assert_frame_equal(result, expected) + + def test_no_reference_cycle(self): + df = DataFrame({"a": [0, 1], "b": [2, 3]}) + for name in ("loc", "iloc", "at", "iat"): + getattr(df, name) + wr = weakref.ref(df) + del df + assert wr() is None + + def test_label_indexing_on_nan(self, nulls_fixture): + # GH 32431 + df = Series([1, "{1,2}", 1, nulls_fixture]) + vc = df.value_counts(dropna=False) + result1 = vc.loc[nulls_fixture] + result2 = vc[nulls_fixture] + + expected = 1 + assert result1 == expected + assert result2 == expected + + +class TestDataframeNoneCoercion: + EXPECTED_SINGLE_ROW_RESULTS = [ + # For numeric series, we should coerce to NaN. + ([1, 2, 3], [np.nan, 2, 3], FutureWarning), + ([1.0, 2.0, 3.0], [np.nan, 2.0, 3.0], None), + # For datetime series, we should coerce to NaT. + ( + [datetime(2000, 1, 1), datetime(2000, 1, 2), datetime(2000, 1, 3)], + [NaT, datetime(2000, 1, 2), datetime(2000, 1, 3)], + None, + ), + # For objects, we should preserve the None value. + (["foo", "bar", "baz"], [None, "bar", "baz"], None), + ] + + @pytest.mark.parametrize("expected", EXPECTED_SINGLE_ROW_RESULTS) + def test_coercion_with_loc(self, expected): + start_data, expected_result, warn = expected + + start_dataframe = DataFrame({"foo": start_data}) + start_dataframe.loc[0, ["foo"]] = None + + expected_dataframe = DataFrame({"foo": expected_result}) + tm.assert_frame_equal(start_dataframe, expected_dataframe) + + @pytest.mark.parametrize("expected", EXPECTED_SINGLE_ROW_RESULTS) + def test_coercion_with_setitem_and_dataframe(self, expected): + start_data, expected_result, warn = expected + + start_dataframe = DataFrame({"foo": start_data}) + start_dataframe[start_dataframe["foo"] == start_dataframe["foo"][0]] = None + + expected_dataframe = DataFrame({"foo": expected_result}) + tm.assert_frame_equal(start_dataframe, expected_dataframe) + + @pytest.mark.parametrize("expected", EXPECTED_SINGLE_ROW_RESULTS) + def test_none_coercion_loc_and_dataframe(self, expected): + start_data, expected_result, warn = expected + + start_dataframe = DataFrame({"foo": start_data}) + start_dataframe.loc[start_dataframe["foo"] == start_dataframe["foo"][0]] = None + + expected_dataframe = DataFrame({"foo": expected_result}) + tm.assert_frame_equal(start_dataframe, expected_dataframe) + + def test_none_coercion_mixed_dtypes(self): + start_dataframe = DataFrame( + { + "a": [1, 2, 3], + "b": [1.0, 2.0, 3.0], + "c": [datetime(2000, 1, 1), datetime(2000, 1, 2), datetime(2000, 1, 3)], + "d": ["a", "b", "c"], + } + ) + start_dataframe.iloc[0] = None + + exp = DataFrame( + { + "a": [np.nan, 2, 3], + "b": [np.nan, 2.0, 3.0], + "c": [NaT, datetime(2000, 1, 2), datetime(2000, 1, 3)], + "d": [None, "b", "c"], + } + ) + tm.assert_frame_equal(start_dataframe, exp) + + +class TestDatetimelikeCoercion: + def test_setitem_dt64_string_scalar(self, tz_naive_fixture, indexer_sli): + # dispatching _can_hold_element to underlying DatetimeArray + tz = tz_naive_fixture + + dti = date_range("2016-01-01", periods=3, tz=tz) + ser = Series(dti.copy(deep=True)) + + values = ser._values + + newval = "2018-01-01" + values._validate_setitem_value(newval) + + indexer_sli(ser)[0] = newval + + if tz is None: + # TODO(EA2D): we can make this no-copy in tz-naive case too + assert ser.dtype == dti.dtype + assert ser._values._ndarray is values._ndarray + else: + assert ser._values is values + + @pytest.mark.parametrize("box", [list, np.array, pd.array, pd.Categorical, Index]) + @pytest.mark.parametrize( + "key", [[0, 1], slice(0, 2), np.array([True, True, False])] + ) + def test_setitem_dt64_string_values(self, tz_naive_fixture, indexer_sli, key, box): + # dispatching _can_hold_element to underling DatetimeArray + tz = tz_naive_fixture + + if isinstance(key, slice) and indexer_sli is tm.loc: + key = slice(0, 1) + + dti = date_range("2016-01-01", periods=3, tz=tz) + ser = Series(dti.copy(deep=True)) + + values = ser._values + + newvals = box(["2019-01-01", "2010-01-02"]) + values._validate_setitem_value(newvals) + + indexer_sli(ser)[key] = newvals + + if tz is None: + # TODO(EA2D): we can make this no-copy in tz-naive case too + assert ser.dtype == dti.dtype + assert ser._values._ndarray is values._ndarray + else: + assert ser._values is values + + @pytest.mark.parametrize("scalar", ["3 Days", offsets.Hour(4)]) + def test_setitem_td64_scalar(self, indexer_sli, scalar): + # dispatching _can_hold_element to underling TimedeltaArray + tdi = timedelta_range("1 Day", periods=3) + ser = Series(tdi.copy(deep=True)) + + values = ser._values + values._validate_setitem_value(scalar) + + indexer_sli(ser)[0] = scalar + assert ser._values._ndarray is values._ndarray + + @pytest.mark.parametrize("box", [list, np.array, pd.array, pd.Categorical, Index]) + @pytest.mark.parametrize( + "key", [[0, 1], slice(0, 2), np.array([True, True, False])] + ) + def test_setitem_td64_string_values(self, indexer_sli, key, box): + # dispatching _can_hold_element to underling TimedeltaArray + if isinstance(key, slice) and indexer_sli is tm.loc: + key = slice(0, 1) + + tdi = timedelta_range("1 Day", periods=3) + ser = Series(tdi.copy(deep=True)) + + values = ser._values + + newvals = box(["10 Days", "44 hours"]) + values._validate_setitem_value(newvals) + + indexer_sli(ser)[key] = newvals + assert ser._values._ndarray is values._ndarray + + +def test_extension_array_cross_section(): + # A cross-section of a homogeneous EA should be an EA + df = DataFrame( + { + "A": pd.array([1, 2], dtype="Int64"), + "B": pd.array([3, 4], dtype="Int64"), + }, + index=["a", "b"], + ) + expected = Series(pd.array([1, 3], dtype="Int64"), index=["A", "B"], name="a") + result = df.loc["a"] + tm.assert_series_equal(result, expected) + + result = df.iloc[0] + tm.assert_series_equal(result, expected) + + +def test_extension_array_cross_section_converts(): + # all numeric columns -> numeric series + df = DataFrame( + { + "A": pd.array([1, 2], dtype="Int64"), + "B": np.array([1, 2], dtype="int64"), + }, + index=["a", "b"], + ) + result = df.loc["a"] + expected = Series([1, 1], dtype="Int64", index=["A", "B"], name="a") + tm.assert_series_equal(result, expected) + + result = df.iloc[0] + tm.assert_series_equal(result, expected) + + # mixed columns -> object series + df = DataFrame( + {"A": pd.array([1, 2], dtype="Int64"), "B": np.array(["a", "b"])}, + index=["a", "b"], + ) + result = df.loc["a"] + expected = Series([1, "a"], dtype=object, index=["A", "B"], name="a") + tm.assert_series_equal(result, expected) + + result = df.iloc[0] + tm.assert_series_equal(result, expected) + + +@pytest.mark.parametrize( + "ser, keys", + [(Series([10]), (0, 0)), (Series([1, 2, 3], index=list("abc")), (0, 1))], +) +def test_ser_tup_indexer_exceeds_dimensions(ser, keys, indexer_li): + # GH#13831 + exp_err, exp_msg = IndexingError, "Too many indexers" + with pytest.raises(exp_err, match=exp_msg): + indexer_li(ser)[keys] + + if indexer_li == tm.iloc: + # For iloc.__setitem__ we let numpy handle the error reporting. + exp_err, exp_msg = IndexError, "too many indices for array" + + with pytest.raises(exp_err, match=exp_msg): + indexer_li(ser)[keys] = 0 + + +def test_ser_list_indexer_exceeds_dimensions(indexer_li): + # GH#13831 + # Make sure an exception is raised when a tuple exceeds the dimension of the series, + # but not list when a list is used. + ser = Series([10]) + res = indexer_li(ser)[[0, 0]] + exp = Series([10, 10], index=Index([0, 0])) + tm.assert_series_equal(res, exp) + + +@pytest.mark.parametrize( + "value", [(0, 1), [0, 1], np.array([0, 1]), array.array("b", [0, 1])] +) +def test_scalar_setitem_with_nested_value(value): + # For numeric data, we try to unpack and thus raise for mismatching length + df = DataFrame({"A": [1, 2, 3]}) + msg = "|".join( + [ + "Must have equal len keys and value", + "setting an array element with a sequence", + ] + ) + with pytest.raises(ValueError, match=msg): + df.loc[0, "B"] = value + + # TODO For object dtype this happens as well, but should we rather preserve + # the nested data and set as such? + df = DataFrame({"A": [1, 2, 3], "B": np.array([1, "a", "b"], dtype=object)}) + with pytest.raises(ValueError, match="Must have equal len keys and value"): + df.loc[0, "B"] = value + # if isinstance(value, np.ndarray): + # assert (df.loc[0, "B"] == value).all() + # else: + # assert df.loc[0, "B"] == value + + +@pytest.mark.parametrize( + "value", [(0, 1), [0, 1], np.array([0, 1]), array.array("b", [0, 1])] +) +def test_scalar_setitem_series_with_nested_value(value, indexer_sli): + # For numeric data, we try to unpack and thus raise for mismatching length + ser = Series([1, 2, 3]) + with pytest.raises(ValueError, match="setting an array element with a sequence"): + indexer_sli(ser)[0] = value + + # but for object dtype we preserve the nested data and set as such + ser = Series([1, "a", "b"], dtype=object) + indexer_sli(ser)[0] = value + if isinstance(value, np.ndarray): + assert (ser.loc[0] == value).all() + else: + assert ser.loc[0] == value + + +@pytest.mark.parametrize( + "value", [(0.0,), [0.0], np.array([0.0]), array.array("d", [0.0])] +) +def test_scalar_setitem_with_nested_value_length1(value): + # https://github.com/pandas-dev/pandas/issues/46268 + + # For numeric data, assigning length-1 array to scalar position gets unpacked + df = DataFrame({"A": [1, 2, 3]}) + df.loc[0, "B"] = value + expected = DataFrame({"A": [1, 2, 3], "B": [0.0, np.nan, np.nan]}) + tm.assert_frame_equal(df, expected) + + # but for object dtype we preserve the nested data + df = DataFrame({"A": [1, 2, 3], "B": np.array([1, "a", "b"], dtype=object)}) + df.loc[0, "B"] = value + if isinstance(value, np.ndarray): + assert (df.loc[0, "B"] == value).all() + else: + assert df.loc[0, "B"] == value + + +@pytest.mark.parametrize( + "value", [(0.0,), [0.0], np.array([0.0]), array.array("d", [0.0])] +) +def test_scalar_setitem_series_with_nested_value_length1(value, indexer_sli): + # For numeric data, assigning length-1 array to scalar position gets unpacked + # TODO this only happens in case of ndarray, should we make this consistent + # for all list-likes? (as happens for DataFrame.(i)loc, see test above) + ser = Series([1.0, 2.0, 3.0]) + if isinstance(value, np.ndarray): + indexer_sli(ser)[0] = value + expected = Series([0.0, 2.0, 3.0]) + tm.assert_series_equal(ser, expected) + else: + with pytest.raises( + ValueError, match="setting an array element with a sequence" + ): + indexer_sli(ser)[0] = value + + # but for object dtype we preserve the nested data + ser = Series([1, "a", "b"], dtype=object) + indexer_sli(ser)[0] = value + if isinstance(value, np.ndarray): + assert (ser.loc[0] == value).all() + else: + assert ser.loc[0] == value + + +def test_object_dtype_series_set_series_element(): + # GH 48933 + s1 = Series(dtype="O", index=["a", "b"]) + + s1["a"] = Series() + s1.loc["b"] = Series() + + tm.assert_series_equal(s1.loc["a"], Series()) + tm.assert_series_equal(s1.loc["b"], Series()) + + s2 = Series(dtype="O", index=["a", "b"]) + + s2.iloc[1] = Series() + tm.assert_series_equal(s2.iloc[1], Series()) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_loc.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_loc.py new file mode 100644 index 0000000000000000000000000000000000000000..a26bf15d0ff39372fb621bd593f69e66fb4d0c7f --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_loc.py @@ -0,0 +1,3411 @@ +""" test label based indexing with loc """ +from collections import namedtuple +import contextlib +from datetime import ( + date, + datetime, + time, + timedelta, +) +import re + +from dateutil.tz import gettz +import numpy as np +import pytest + +from pandas._config import using_string_dtype + +from pandas._libs import index as libindex +from pandas.compat.numpy import np_version_gt2 +from pandas.errors import IndexingError +import pandas.util._test_decorators as td + +import pandas as pd +from pandas import ( + Categorical, + CategoricalDtype, + CategoricalIndex, + DataFrame, + DatetimeIndex, + Index, + IndexSlice, + MultiIndex, + Period, + PeriodIndex, + Series, + SparseDtype, + Timedelta, + Timestamp, + date_range, + timedelta_range, + to_datetime, + to_timedelta, +) +import pandas._testing as tm +from pandas.api.types import is_scalar +from pandas.core.indexing import _one_ellipsis_message +from pandas.tests.indexing.common import check_indexing_smoketest_or_raises + + +@pytest.mark.parametrize( + "series, new_series, expected_ser", + [ + [[np.nan, np.nan, "b"], ["a", np.nan, np.nan], [False, True, True]], + [[np.nan, "b"], ["a", np.nan], [False, True]], + ], +) +def test_not_change_nan_loc(series, new_series, expected_ser): + # GH 28403 + df = DataFrame({"A": series}) + df.loc[:, "A"] = new_series + expected = DataFrame({"A": expected_ser}) + tm.assert_frame_equal(df.isna(), expected) + tm.assert_frame_equal(df.notna(), ~expected) + + +class TestLoc: + def test_none_values_on_string_columns(self, using_infer_string): + # Issue #32218 + df = DataFrame(["1", "2", None], columns=["a"], dtype=object) + assert df.loc[2, "a"] is None + + df = DataFrame(["1", "2", None], columns=["a"], dtype="str") + if using_infer_string: + assert np.isnan(df.loc[2, "a"]) + else: + assert df.loc[2, "a"] is None + + @pytest.mark.parametrize("kind", ["series", "frame"]) + def test_loc_getitem_int(self, kind, request): + # int label + obj = request.getfixturevalue(f"{kind}_labels") + check_indexing_smoketest_or_raises(obj, "loc", 2, fails=KeyError) + + @pytest.mark.parametrize("kind", ["series", "frame"]) + def test_loc_getitem_label(self, kind, request): + # label + obj = request.getfixturevalue(f"{kind}_empty") + check_indexing_smoketest_or_raises(obj, "loc", "c", fails=KeyError) + + @pytest.mark.parametrize( + "key, typs, axes", + [ + ["f", ["ints", "uints", "labels", "mixed", "ts"], None], + ["f", ["floats"], None], + [20, ["ints", "uints", "mixed"], None], + [20, ["labels"], None], + [20, ["ts"], 0], + [20, ["floats"], 0], + ], + ) + @pytest.mark.parametrize("kind", ["series", "frame"]) + def test_loc_getitem_label_out_of_range(self, key, typs, axes, kind, request): + for typ in typs: + obj = request.getfixturevalue(f"{kind}_{typ}") + # out of range label + check_indexing_smoketest_or_raises( + obj, "loc", key, axes=axes, fails=KeyError + ) + + @pytest.mark.parametrize( + "key, typs", + [ + [[0, 1, 2], ["ints", "uints", "floats"]], + [[1, 3.0, "A"], ["ints", "uints", "floats"]], + ], + ) + @pytest.mark.parametrize("kind", ["series", "frame"]) + def test_loc_getitem_label_list(self, key, typs, kind, request): + for typ in typs: + obj = request.getfixturevalue(f"{kind}_{typ}") + # list of labels + check_indexing_smoketest_or_raises(obj, "loc", key, fails=KeyError) + + @pytest.mark.parametrize( + "key, typs, axes", + [ + [[0, 1, 2], ["empty"], None], + [[0, 2, 10], ["ints", "uints", "floats"], 0], + [[3, 6, 7], ["ints", "uints", "floats"], 1], + # GH 17758 - MultiIndex and missing keys + [[(1, 3), (1, 4), (2, 5)], ["multi"], 0], + ], + ) + @pytest.mark.parametrize("kind", ["series", "frame"]) + def test_loc_getitem_label_list_with_missing(self, key, typs, axes, kind, request): + for typ in typs: + obj = request.getfixturevalue(f"{kind}_{typ}") + check_indexing_smoketest_or_raises( + obj, "loc", key, axes=axes, fails=KeyError + ) + + @pytest.mark.parametrize("typs", ["ints", "uints"]) + @pytest.mark.parametrize("kind", ["series", "frame"]) + def test_loc_getitem_label_list_fails(self, typs, kind, request): + # fails + obj = request.getfixturevalue(f"{kind}_{typs}") + check_indexing_smoketest_or_raises( + obj, "loc", [20, 30, 40], axes=1, fails=KeyError + ) + + def test_loc_getitem_label_array_like(self): + # TODO: test something? + # array like + pass + + @pytest.mark.parametrize("kind", ["series", "frame"]) + def test_loc_getitem_bool(self, kind, request): + obj = request.getfixturevalue(f"{kind}_empty") + # boolean indexers + b = [True, False, True, False] + + check_indexing_smoketest_or_raises(obj, "loc", b, fails=IndexError) + + @pytest.mark.parametrize( + "slc, typs, axes, fails", + [ + [ + slice(1, 3), + ["labels", "mixed", "empty", "ts", "floats"], + None, + TypeError, + ], + [slice("20130102", "20130104"), ["ts"], 1, TypeError], + [slice(2, 8), ["mixed"], 0, TypeError], + [slice(2, 8), ["mixed"], 1, KeyError], + [slice(2, 4, 2), ["mixed"], 0, TypeError], + ], + ) + @pytest.mark.parametrize("kind", ["series", "frame"]) + def test_loc_getitem_label_slice(self, slc, typs, axes, fails, kind, request): + # label slices (with ints) + + # real label slices + + # GH 14316 + for typ in typs: + obj = request.getfixturevalue(f"{kind}_{typ}") + check_indexing_smoketest_or_raises( + obj, + "loc", + slc, + axes=axes, + fails=fails, + ) + + def test_setitem_from_duplicate_axis(self): + # GH#34034 + df = DataFrame( + [[20, "a"], [200, "a"], [200, "a"]], + columns=["col1", "col2"], + index=[10, 1, 1], + ) + df.loc[1, "col1"] = np.arange(2) + expected = DataFrame( + [[20, "a"], [0, "a"], [1, "a"]], columns=["col1", "col2"], index=[10, 1, 1] + ) + tm.assert_frame_equal(df, expected) + + def test_column_types_consistent(self): + # GH 26779 + df = DataFrame( + data={ + "channel": [1, 2, 3], + "A": ["String 1", np.nan, "String 2"], + "B": [ + Timestamp("2019-06-11 11:00:00"), + pd.NaT, + Timestamp("2019-06-11 12:00:00"), + ], + } + ) + df2 = DataFrame( + data={"A": ["String 3"], "B": [Timestamp("2019-06-11 12:00:00")]} + ) + # Change Columns A and B to df2.values wherever Column A is NaN + df.loc[df["A"].isna(), ["A", "B"]] = df2.values + expected = DataFrame( + data={ + "channel": [1, 2, 3], + "A": ["String 1", "String 3", "String 2"], + "B": [ + Timestamp("2019-06-11 11:00:00"), + Timestamp("2019-06-11 12:00:00"), + Timestamp("2019-06-11 12:00:00"), + ], + } + ) + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize( + "obj, key, exp", + [ + ( + DataFrame([[1]], columns=Index([False])), + IndexSlice[:, False], + Series([1], name=False), + ), + (Series([1], index=Index([False])), False, [1]), + (DataFrame([[1]], index=Index([False])), False, Series([1], name=False)), + ], + ) + def test_loc_getitem_single_boolean_arg(self, obj, key, exp): + # GH 44322 + res = obj.loc[key] + if isinstance(exp, (DataFrame, Series)): + tm.assert_equal(res, exp) + else: + assert res == exp + + +class TestLocBaseIndependent: + # Tests for loc that do not depend on subclassing Base + def test_loc_npstr(self): + # GH#45580 + df = DataFrame(index=date_range("2021", "2022")) + result = df.loc[np.array(["2021/6/1"])[0] :] + expected = df.iloc[151:] + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "msg, key", + [ + (r"Period\('2019', 'Y-DEC'\), 'foo', 'bar'", (Period(2019), "foo", "bar")), + (r"Period\('2019', 'Y-DEC'\), 'y1', 'bar'", (Period(2019), "y1", "bar")), + (r"Period\('2019', 'Y-DEC'\), 'foo', 'z1'", (Period(2019), "foo", "z1")), + ( + r"Period\('2018', 'Y-DEC'\), Period\('2016', 'Y-DEC'\), 'bar'", + (Period(2018), Period(2016), "bar"), + ), + (r"Period\('2018', 'Y-DEC'\), 'foo', 'y1'", (Period(2018), "foo", "y1")), + ( + r"Period\('2017', 'Y-DEC'\), 'foo', Period\('2015', 'Y-DEC'\)", + (Period(2017), "foo", Period(2015)), + ), + (r"Period\('2017', 'Y-DEC'\), 'z1', 'bar'", (Period(2017), "z1", "bar")), + ], + ) + def test_contains_raise_error_if_period_index_is_in_multi_index(self, msg, key): + # GH#20684 + """ + parse_datetime_string_with_reso return parameter if type not matched. + PeriodIndex.get_loc takes returned value from parse_datetime_string_with_reso + as a tuple. + If first argument is Period and a tuple has 3 items, + process go on not raise exception + """ + df = DataFrame( + { + "A": [Period(2019), "x1", "x2"], + "B": [Period(2018), Period(2016), "y1"], + "C": [Period(2017), "z1", Period(2015)], + "V1": [1, 2, 3], + "V2": [10, 20, 30], + } + ).set_index(["A", "B", "C"]) + with pytest.raises(KeyError, match=msg): + df.loc[key] + + def test_loc_getitem_missing_unicode_key(self): + df = DataFrame({"a": [1]}) + with pytest.raises(KeyError, match="\u05d0"): + df.loc[:, "\u05d0"] # should not raise UnicodeEncodeError + + def test_loc_getitem_dups(self): + # GH 5678 + # repeated getitems on a dup index returning a ndarray + df = DataFrame( + np.random.default_rng(2).random((20, 5)), + index=["ABCDE"[x % 5] for x in range(20)], + ) + expected = df.loc["A", 0] + result = df.loc[:, 0].loc["A"] + tm.assert_series_equal(result, expected) + + def test_loc_getitem_dups2(self): + # GH4726 + # dup indexing with iloc/loc + df = DataFrame( + [[1, 2, "foo", "bar", Timestamp("20130101")]], + columns=["a", "a", "a", "a", "a"], + index=[1], + ) + expected = Series( + [1, 2, "foo", "bar", Timestamp("20130101")], + index=["a", "a", "a", "a", "a"], + name=1, + ) + + result = df.iloc[0] + tm.assert_series_equal(result, expected) + + result = df.loc[1] + tm.assert_series_equal(result, expected) + + def test_loc_setitem_dups(self): + # GH 6541 + df_orig = DataFrame( + { + "me": list("rttti"), + "foo": list("aaade"), + "bar": np.arange(5, dtype="float64") * 1.34 + 2, + "bar2": np.arange(5, dtype="float64") * -0.34 + 2, + } + ).set_index("me") + + indexer = ( + "r", + ["bar", "bar2"], + ) + df = df_orig.copy() + df.loc[indexer] *= 2.0 + tm.assert_series_equal(df.loc[indexer], 2.0 * df_orig.loc[indexer]) + + indexer = ( + "r", + "bar", + ) + df = df_orig.copy() + df.loc[indexer] *= 2.0 + assert df.loc[indexer] == 2.0 * df_orig.loc[indexer] + + indexer = ( + "t", + ["bar", "bar2"], + ) + df = df_orig.copy() + df.loc[indexer] *= 2.0 + tm.assert_frame_equal(df.loc[indexer], 2.0 * df_orig.loc[indexer]) + + def test_loc_setitem_slice(self): + # GH10503 + + # assigning the same type should not change the type + df1 = DataFrame({"a": [0, 1, 1], "b": Series([100, 200, 300], dtype="uint32")}) + ix = df1["a"] == 1 + newb1 = df1.loc[ix, "b"] + 1 + df1.loc[ix, "b"] = newb1 + expected = DataFrame( + {"a": [0, 1, 1], "b": Series([100, 201, 301], dtype="uint32")} + ) + tm.assert_frame_equal(df1, expected) + + # assigning a new type should get the inferred type + df2 = DataFrame({"a": [0, 1, 1], "b": [100, 200, 300]}, dtype="uint64") + ix = df1["a"] == 1 + newb2 = df2.loc[ix, "b"] + with tm.assert_produces_warning( + FutureWarning, match="item of incompatible dtype" + ): + df1.loc[ix, "b"] = newb2 + expected = DataFrame({"a": [0, 1, 1], "b": [100, 200, 300]}, dtype="uint64") + tm.assert_frame_equal(df2, expected) + + def test_loc_setitem_dtype(self): + # GH31340 + df = DataFrame({"id": ["A"], "a": [1.2], "b": [0.0], "c": [-2.5]}) + cols = ["a", "b", "c"] + df.loc[:, cols] = df.loc[:, cols].astype("float32") + + # pre-2.0 this setting would swap in new arrays, in 2.0 it is correctly + # in-place, consistent with non-split-path + expected = DataFrame( + { + "id": ["A"], + "a": np.array([1.2], dtype="float64"), + "b": np.array([0.0], dtype="float64"), + "c": np.array([-2.5], dtype="float64"), + } + ) # id is inferred as object + + tm.assert_frame_equal(df, expected) + + def test_getitem_label_list_with_missing(self): + s = Series(range(3), index=["a", "b", "c"]) + + # consistency + with pytest.raises(KeyError, match="not in index"): + s[["a", "d"]] + + s = Series(range(3)) + with pytest.raises(KeyError, match="not in index"): + s[[0, 3]] + + @pytest.mark.parametrize("index", [[True, False], [True, False, True, False]]) + def test_loc_getitem_bool_diff_len(self, index): + # GH26658 + s = Series([1, 2, 3]) + msg = f"Boolean index has wrong length: {len(index)} instead of {len(s)}" + with pytest.raises(IndexError, match=msg): + s.loc[index] + + def test_loc_getitem_int_slice(self): + # TODO: test something here? + pass + + def test_loc_to_fail(self): + # GH3449 + df = DataFrame( + np.random.default_rng(2).random((3, 3)), + index=["a", "b", "c"], + columns=["e", "f", "g"], + ) + + msg = ( + rf"\"None of \[Index\(\[1, 2\], dtype='{np.dtype(int)}'\)\] are " + r"in the \[index\]\"" + ) + with pytest.raises(KeyError, match=msg): + df.loc[[1, 2], [1, 2]] + + def test_loc_to_fail2(self): + # GH 7496 + # loc should not fallback + + s = Series(dtype=object) + s.loc[1] = 1 + s.loc["a"] = 2 + + with pytest.raises(KeyError, match=r"^-1$"): + s.loc[-1] + + msg = ( + rf"\"None of \[Index\(\[-1, -2\], dtype='{np.dtype(int)}'\)\] are " + r"in the \[index\]\"" + ) + with pytest.raises(KeyError, match=msg): + s.loc[[-1, -2]] + + msg = r"\"None of \[Index\(\['4'\], dtype='object'\)\] are in the \[index\]\"" + with pytest.raises(KeyError, match=msg): + s.loc[Index(["4"], dtype=object)] + + s.loc[-1] = 3 + with pytest.raises(KeyError, match="not in index"): + s.loc[[-1, -2]] + + s["a"] = 2 + msg = ( + rf"\"None of \[Index\(\[-2\], dtype='{np.dtype(int)}'\)\] are " + r"in the \[index\]\"" + ) + with pytest.raises(KeyError, match=msg): + s.loc[[-2]] + + del s["a"] + + with pytest.raises(KeyError, match=msg): + s.loc[[-2]] = 0 + + def test_loc_to_fail3(self): + # inconsistency between .loc[values] and .loc[values,:] + # GH 7999 + df = DataFrame([["a"], ["b"]], index=[1, 2], columns=["value"]) + + msg = ( + rf"\"None of \[Index\(\[3\], dtype='{np.dtype(int)}'\)\] are " + r"in the \[index\]\"" + ) + with pytest.raises(KeyError, match=msg): + df.loc[[3], :] + + with pytest.raises(KeyError, match=msg): + df.loc[[3]] + + def test_loc_getitem_list_with_fail(self): + # 15747 + # should KeyError if *any* missing labels + + s = Series([1, 2, 3]) + + s.loc[[2]] + + msg = f"\"None of [Index([3], dtype='{np.dtype(int)}')] are in the [index]" + with pytest.raises(KeyError, match=re.escape(msg)): + s.loc[[3]] + + # a non-match and a match + with pytest.raises(KeyError, match="not in index"): + s.loc[[2, 3]] + + def test_loc_index(self): + # gh-17131 + # a boolean index should index like a boolean numpy array + + df = DataFrame( + np.random.default_rng(2).random(size=(5, 10)), + index=["alpha_0", "alpha_1", "alpha_2", "beta_0", "beta_1"], + ) + + mask = df.index.map(lambda x: "alpha" in x) + expected = df.loc[np.array(mask)] + + result = df.loc[mask] + tm.assert_frame_equal(result, expected) + + result = df.loc[mask.values] + tm.assert_frame_equal(result, expected) + + result = df.loc[pd.array(mask, dtype="boolean")] + tm.assert_frame_equal(result, expected) + + def test_loc_general(self): + df = DataFrame( + np.random.default_rng(2).random((4, 4)), + columns=["A", "B", "C", "D"], + index=["A", "B", "C", "D"], + ) + + # want this to work + result = df.loc[:, "A":"B"].iloc[0:2, :] + assert (result.columns == ["A", "B"]).all() + assert (result.index == ["A", "B"]).all() + + # mixed type + result = DataFrame({"a": [Timestamp("20130101")], "b": [1]}).iloc[0] + expected = Series([Timestamp("20130101"), 1], index=["a", "b"], name=0) + tm.assert_series_equal(result, expected) + assert result.dtype == object + + @pytest.fixture + def frame_for_consistency(self): + return DataFrame( + { + "date": date_range("2000-01-01", "2000-01-5"), + "val": Series(range(5), dtype=np.int64), + } + ) + + @pytest.mark.parametrize( + "val", + [0, np.array(0, dtype=np.int64), np.array([0, 0, 0, 0, 0], dtype=np.int64)], + ) + def test_loc_setitem_consistency(self, frame_for_consistency, val): + # GH 6149 + # coerce similarly for setitem and loc when rows have a null-slice + expected = DataFrame( + { + "date": Series(0, index=range(5), dtype=np.int64), + "val": Series(range(5), dtype=np.int64), + } + ) + df = frame_for_consistency.copy() + with tm.assert_produces_warning(FutureWarning, match="incompatible dtype"): + df.loc[:, "date"] = val + tm.assert_frame_equal(df, expected) + + def test_loc_setitem_consistency_dt64_to_str(self, frame_for_consistency): + # GH 6149 + # coerce similarly for setitem and loc when rows have a null-slice + + expected = DataFrame( + { + "date": Series("foo", index=range(5)), + "val": Series(range(5), dtype=np.int64), + } + ) + df = frame_for_consistency.copy() + with tm.assert_produces_warning(FutureWarning, match="incompatible dtype"): + df.loc[:, "date"] = "foo" + tm.assert_frame_equal(df, expected) + + def test_loc_setitem_consistency_dt64_to_float(self, frame_for_consistency): + # GH 6149 + # coerce similarly for setitem and loc when rows have a null-slice + expected = DataFrame( + { + "date": Series(1.0, index=range(5)), + "val": Series(range(5), dtype=np.int64), + } + ) + df = frame_for_consistency.copy() + with tm.assert_produces_warning(FutureWarning, match="incompatible dtype"): + df.loc[:, "date"] = 1.0 + tm.assert_frame_equal(df, expected) + + def test_loc_setitem_consistency_single_row(self): + # GH 15494 + # setting on frame with single row + df = DataFrame({"date": Series([Timestamp("20180101")])}) + with tm.assert_produces_warning(FutureWarning, match="incompatible dtype"): + df.loc[:, "date"] = "string" + expected = DataFrame({"date": Series(["string"])}) + tm.assert_frame_equal(df, expected) + + def test_loc_setitem_consistency_empty(self): + # empty (essentially noops) + # before the enforcement of #45333 in 2.0, the loc.setitem here would + # change the dtype of df.x to int64 + expected = DataFrame(columns=["x", "y"]) + df = DataFrame(columns=["x", "y"]) + with tm.assert_produces_warning(None): + df.loc[:, "x"] = 1 + tm.assert_frame_equal(df, expected) + + # setting with setitem swaps in a new array, so changes the dtype + df = DataFrame(columns=["x", "y"]) + df["x"] = 1 + expected["x"] = expected["x"].astype(np.int64) + tm.assert_frame_equal(df, expected) + + # incompatible dtype warning + @pytest.mark.xfail(using_string_dtype(), reason="TODO(infer_string)") + def test_loc_setitem_consistency_slice_column_len(self, using_infer_string): + # .loc[:,column] setting with slice == len of the column + # GH10408 + levels = [ + ["Region_1"] * 4, + ["Site_1", "Site_1", "Site_2", "Site_2"], + [3987227376, 3980680971, 3977723249, 3977723089], + ] + mi = MultiIndex.from_arrays(levels, names=["Region", "Site", "RespondentID"]) + + clevels = [ + ["Respondent", "Respondent", "Respondent", "OtherCat", "OtherCat"], + ["Something", "StartDate", "EndDate", "Yes/No", "SomethingElse"], + ] + cols = MultiIndex.from_arrays(clevels, names=["Level_0", "Level_1"]) + + values = [ + ["A", "5/25/2015 10:59", "5/25/2015 11:22", "Yes", np.nan], + ["A", "5/21/2015 9:40", "5/21/2015 9:52", "Yes", "Yes"], + ["A", "5/20/2015 8:27", "5/20/2015 8:41", "Yes", np.nan], + ["A", "5/20/2015 8:33", "5/20/2015 9:09", "Yes", "No"], + ] + df = DataFrame(values, index=mi, columns=cols) + + ctx = contextlib.nullcontext() + if using_infer_string: + ctx = pytest.raises(TypeError, match="Invalid value") + + with ctx: + df.loc[:, ("Respondent", "StartDate")] = to_datetime( + df.loc[:, ("Respondent", "StartDate")] + ) + with ctx: + df.loc[:, ("Respondent", "EndDate")] = to_datetime( + df.loc[:, ("Respondent", "EndDate")] + ) + + if using_infer_string: + # infer-objects won't infer stuff anymore + return + + df = df.infer_objects() + + # Adding a new key + df.loc[:, ("Respondent", "Duration")] = ( + df.loc[:, ("Respondent", "EndDate")] + - df.loc[:, ("Respondent", "StartDate")] + ) + + # timedelta64[m] -> float, so this cannot be done inplace, so + # no warning + with tm.assert_produces_warning(FutureWarning, match="incompatible dtype"): + df.loc[:, ("Respondent", "Duration")] = df.loc[ + :, ("Respondent", "Duration") + ] / Timedelta(60_000_000_000) + + expected = Series( + [23.0, 12.0, 14.0, 36.0], index=df.index, name=("Respondent", "Duration") + ) + tm.assert_series_equal(df[("Respondent", "Duration")], expected) + + @pytest.mark.parametrize("unit", ["Y", "M", "D", "h", "m", "s", "ms", "us"]) + def test_loc_assign_non_ns_datetime(self, unit): + # GH 27395, non-ns dtype assignment via .loc should work + # and return the same result when using simple assignment + df = DataFrame( + { + "timestamp": [ + np.datetime64("2017-02-11 12:41:29"), + np.datetime64("1991-11-07 04:22:37"), + ] + } + ) + + df.loc[:, unit] = df.loc[:, "timestamp"].values.astype(f"datetime64[{unit}]") + df["expected"] = df.loc[:, "timestamp"].values.astype(f"datetime64[{unit}]") + expected = Series(df.loc[:, "expected"], name=unit) + tm.assert_series_equal(df.loc[:, unit], expected) + + def test_loc_modify_datetime(self): + # see gh-28837 + df = DataFrame.from_dict( + {"date": [1485264372711, 1485265925110, 1540215845888, 1540282121025]} + ) + + df["date_dt"] = to_datetime(df["date"], unit="ms", cache=True) + + df.loc[:, "date_dt_cp"] = df.loc[:, "date_dt"] + df.loc[[2, 3], "date_dt_cp"] = df.loc[[2, 3], "date_dt"] + + expected = DataFrame( + [ + [1485264372711, "2017-01-24 13:26:12.711", "2017-01-24 13:26:12.711"], + [1485265925110, "2017-01-24 13:52:05.110", "2017-01-24 13:52:05.110"], + [1540215845888, "2018-10-22 13:44:05.888", "2018-10-22 13:44:05.888"], + [1540282121025, "2018-10-23 08:08:41.025", "2018-10-23 08:08:41.025"], + ], + columns=["date", "date_dt", "date_dt_cp"], + ) + + columns = ["date_dt", "date_dt_cp"] + expected[columns] = expected[columns].apply(to_datetime) + + tm.assert_frame_equal(df, expected) + + @pytest.mark.filterwarnings("ignore:Setting a value on a view:FutureWarning") + @pytest.mark.parametrize("has_ref", [True, False]) + def test_loc_setitem_frame_with_reindex(self, has_ref): + # GH#6254 setting issue + df = DataFrame(index=[3, 5, 4], columns=["A"], dtype=float) + if has_ref: + view = df[:] # noqa: F841 + df.loc[[4, 3, 5], "A"] = np.array([1, 2, 3], dtype="int64") + + # setting integer values into a float dataframe with loc is inplace, + # so we retain float dtype + ser = Series([2, 3, 1], index=[3, 5, 4], dtype=float) + expected = DataFrame({"A": ser}) + tm.assert_frame_equal(df, expected) + + def test_loc_setitem_frame_with_reindex_mixed(self): + # GH#40480 + df = DataFrame(index=[3, 5, 4], columns=["A", "B"], dtype=float) + df["B"] = "string" + df.loc[[4, 3, 5], "A"] = np.array([1, 2, 3], dtype="int64") + ser = Series([2, 3, 1], index=[3, 5, 4], dtype="int64") + # pre-2.0 this setting swapped in a new array, now it is inplace + # consistent with non-split-path + expected = DataFrame({"A": ser.astype(float)}) + expected["B"] = "string" + tm.assert_frame_equal(df, expected) + + def test_loc_setitem_frame_with_inverted_slice(self): + # GH#40480 + df = DataFrame(index=[1, 2, 3], columns=["A", "B"], dtype=float) + df["B"] = "string" + df.loc[slice(3, 0, -1), "A"] = np.array([1, 2, 3], dtype="int64") + # pre-2.0 this setting swapped in a new array, now it is inplace + # consistent with non-split-path + expected = DataFrame({"A": [3.0, 2.0, 1.0], "B": "string"}, index=[1, 2, 3]) + tm.assert_frame_equal(df, expected) + + @pytest.mark.filterwarnings("ignore:Setting a value on a view:FutureWarning") + @pytest.mark.parametrize("has_ref", [True, False]) + def test_loc_setitem_empty_frame(self, has_ref): + # GH#6252 setting with an empty frame + keys1 = ["@" + str(i) for i in range(5)] + val1 = np.arange(5, dtype="int64") + + keys2 = ["@" + str(i) for i in range(4)] + val2 = np.arange(4, dtype="int64") + + index = list(set(keys1).union(keys2)) + df = DataFrame(index=index) + df["A"] = np.nan + if has_ref: + view = df[:] # noqa: F841 + df.loc[keys1, "A"] = val1 + + df["B"] = np.nan + df.loc[keys2, "B"] = val2 + + # Because df["A"] was initialized as float64, setting values into it + # is inplace, so that dtype is retained + sera = Series(val1, index=keys1, dtype=np.float64) + serb = Series(val2, index=keys2) + expected = DataFrame({"A": sera, "B": serb}, columns=Index(["A", "B"])).reindex( + index=index + ) + tm.assert_frame_equal(df, expected) + + @pytest.mark.filterwarnings("ignore:Setting a value on a view:FutureWarning") + @pytest.mark.parametrize("has_ref", [True, False]) + def test_loc_setitem_frame(self, has_ref): + df = DataFrame( + np.random.default_rng(2).standard_normal((4, 4)), + index=list("abcd"), + columns=list("ABCD"), + ) + if has_ref: + view = df[:] # noqa: F841 + + result = df.iloc[0, 0] + + df.loc["a", "A"] = 1 + result = df.loc["a", "A"] + assert result == 1 + + result = df.iloc[0, 0] + assert result == 1 + + df.loc[:, "B":"D"] = 0 + expected = df.loc[:, "B":"D"] + result = df.iloc[:, 1:] + tm.assert_frame_equal(result, expected) + + def test_loc_setitem_frame_nan_int_coercion_invalid(self): + # GH 8669 + # invalid coercion of nan -> int + df = DataFrame({"A": [1, 2, 3], "B": np.nan}) + df.loc[df.B > df.A, "B"] = df.A + expected = DataFrame({"A": [1, 2, 3], "B": np.nan}) + tm.assert_frame_equal(df, expected) + + def test_loc_setitem_frame_mixed_labels(self): + # GH 6546 + # setting with mixed labels + df = DataFrame({1: [1, 2], 2: [3, 4], "a": ["a", "b"]}) + + result = df.loc[0, [1, 2]] + expected = Series( + [1, 3], index=Index([1, 2], dtype=object), dtype=object, name=0 + ) + tm.assert_series_equal(result, expected) + + expected = DataFrame({1: [5, 2], 2: [6, 4], "a": ["a", "b"]}) + df.loc[0, [1, 2]] = [5, 6] + tm.assert_frame_equal(df, expected) + + @pytest.mark.filterwarnings("ignore:Setting a value on a view:FutureWarning") + def test_loc_setitem_frame_multiples(self, warn_copy_on_write): + # multiple setting + df = DataFrame( + {"A": ["foo", "bar", "baz"], "B": Series(range(3), dtype=np.int64)} + ) + rhs = df.loc[1:2] + rhs.index = df.index[0:2] + df.loc[0:1] = rhs + expected = DataFrame( + {"A": ["bar", "baz", "baz"], "B": Series([1, 2, 2], dtype=np.int64)} + ) + tm.assert_frame_equal(df, expected) + + # multiple setting with frame on rhs (with M8) + df = DataFrame( + { + "date": date_range("2000-01-01", "2000-01-5"), + "val": Series(range(5), dtype=np.int64), + } + ) + expected = DataFrame( + { + "date": [ + Timestamp("20000101"), + Timestamp("20000102"), + Timestamp("20000101"), + Timestamp("20000102"), + Timestamp("20000103"), + ], + "val": Series([0, 1, 0, 1, 2], dtype=np.int64), + } + ) + rhs = df.loc[0:2] + rhs.index = df.index[2:5] + df.loc[2:4] = rhs + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize( + "indexer", [["A"], slice(None, "A", None), np.array(["A"])] + ) + @pytest.mark.parametrize("value", [["Z"], np.array(["Z"])]) + def test_loc_setitem_with_scalar_index(self, indexer, value): + # GH #19474 + # assigning like "df.loc[0, ['A']] = ['Z']" should be evaluated + # elementwisely, not using "setter('A', ['Z'])". + + # Set object dtype to avoid upcast when setting 'Z' + df = DataFrame([[1, 2], [3, 4]], columns=["A", "B"]).astype({"A": object}) + df.loc[0, indexer] = value + result = df.loc[0, "A"] + + assert is_scalar(result) and result == "Z" + + @pytest.mark.parametrize( + "index,box,expected", + [ + ( + ([0, 2], ["A", "B", "C", "D"]), + 7, + DataFrame( + [[7, 7, 7, 7], [3, 4, np.nan, np.nan], [7, 7, 7, 7]], + columns=["A", "B", "C", "D"], + ), + ), + ( + (1, ["C", "D"]), + [7, 8], + DataFrame( + [[1, 2, np.nan, np.nan], [3, 4, 7, 8], [5, 6, np.nan, np.nan]], + columns=["A", "B", "C", "D"], + ), + ), + ( + (1, ["A", "B", "C"]), + np.array([7, 8, 9], dtype=np.int64), + DataFrame( + [[1, 2, np.nan], [7, 8, 9], [5, 6, np.nan]], columns=["A", "B", "C"] + ), + ), + ( + (slice(1, 3, None), ["B", "C", "D"]), + [[7, 8, 9], [10, 11, 12]], + DataFrame( + [[1, 2, np.nan, np.nan], [3, 7, 8, 9], [5, 10, 11, 12]], + columns=["A", "B", "C", "D"], + ), + ), + ( + (slice(1, 3, None), ["C", "A", "D"]), + np.array([[7, 8, 9], [10, 11, 12]], dtype=np.int64), + DataFrame( + [[1, 2, np.nan, np.nan], [8, 4, 7, 9], [11, 6, 10, 12]], + columns=["A", "B", "C", "D"], + ), + ), + ( + (slice(None, None, None), ["A", "C"]), + DataFrame([[7, 8], [9, 10], [11, 12]], columns=["A", "C"]), + DataFrame( + [[7, 2, 8], [9, 4, 10], [11, 6, 12]], columns=["A", "B", "C"] + ), + ), + ], + ) + def test_loc_setitem_missing_columns(self, index, box, expected): + # GH 29334 + df = DataFrame([[1, 2], [3, 4], [5, 6]], columns=["A", "B"]) + + df.loc[index] = box + tm.assert_frame_equal(df, expected) + + def test_loc_coercion(self): + # GH#12411 + df = DataFrame({"date": [Timestamp("20130101").tz_localize("UTC"), pd.NaT]}) + expected = df.dtypes + + result = df.iloc[[0]] + tm.assert_series_equal(result.dtypes, expected) + + result = df.iloc[[1]] + tm.assert_series_equal(result.dtypes, expected) + + def test_loc_coercion2(self): + # GH#12045 + df = DataFrame({"date": [datetime(2012, 1, 1), datetime(1012, 1, 2)]}) + expected = df.dtypes + + result = df.iloc[[0]] + tm.assert_series_equal(result.dtypes, expected) + + result = df.iloc[[1]] + tm.assert_series_equal(result.dtypes, expected) + + def test_loc_coercion3(self): + # GH#11594 + df = DataFrame({"text": ["some words"] + [None] * 9}) + expected = df.dtypes + + result = df.iloc[0:2] + tm.assert_series_equal(result.dtypes, expected) + + result = df.iloc[3:] + tm.assert_series_equal(result.dtypes, expected) + + def test_setitem_new_key_tz(self, indexer_sl): + # GH#12862 should not raise on assigning the second value + vals = [ + to_datetime(42).tz_localize("UTC"), + to_datetime(666).tz_localize("UTC"), + ] + expected = Series(vals, index=Index(["foo", "bar"])) + + ser = Series(dtype=object) + indexer_sl(ser)["foo"] = vals[0] + indexer_sl(ser)["bar"] = vals[1] + + tm.assert_series_equal(ser, expected) + + def test_loc_non_unique(self): + # GH3659 + # non-unique indexer with loc slice + # https://groups.google.com/forum/?fromgroups#!topic/pydata/zTm2No0crYs + + # these are going to raise because the we are non monotonic + df = DataFrame( + {"A": [1, 2, 3, 4, 5, 6], "B": [3, 4, 5, 6, 7, 8]}, index=[0, 1, 0, 1, 2, 3] + ) + msg = "'Cannot get left slice bound for non-unique label: 1'" + with pytest.raises(KeyError, match=msg): + df.loc[1:] + msg = "'Cannot get left slice bound for non-unique label: 0'" + with pytest.raises(KeyError, match=msg): + df.loc[0:] + msg = "'Cannot get left slice bound for non-unique label: 1'" + with pytest.raises(KeyError, match=msg): + df.loc[1:2] + + # monotonic are ok + df = DataFrame( + {"A": [1, 2, 3, 4, 5, 6], "B": [3, 4, 5, 6, 7, 8]}, index=[0, 1, 0, 1, 2, 3] + ).sort_index(axis=0) + result = df.loc[1:] + expected = DataFrame({"A": [2, 4, 5, 6], "B": [4, 6, 7, 8]}, index=[1, 1, 2, 3]) + tm.assert_frame_equal(result, expected) + + result = df.loc[0:] + tm.assert_frame_equal(result, df) + + result = df.loc[1:2] + expected = DataFrame({"A": [2, 4, 5], "B": [4, 6, 7]}, index=[1, 1, 2]) + tm.assert_frame_equal(result, expected) + + @pytest.mark.arm_slow + @pytest.mark.parametrize("length, l2", [[900, 100], [900000, 100000]]) + def test_loc_non_unique_memory_error(self, length, l2): + # GH 4280 + # non_unique index with a large selection triggers a memory error + + columns = list("ABCDEFG") + + df = pd.concat( + [ + DataFrame( + np.random.default_rng(2).standard_normal((length, len(columns))), + index=np.arange(length), + columns=columns, + ), + DataFrame(np.ones((l2, len(columns))), index=[0] * l2, columns=columns), + ] + ) + + assert df.index.is_unique is False + + mask = np.arange(l2) + result = df.loc[mask] + expected = pd.concat( + [ + df.take([0]), + DataFrame( + np.ones((len(mask), len(columns))), + index=[0] * len(mask), + columns=columns, + ), + df.take(mask[1:]), + ] + ) + tm.assert_frame_equal(result, expected) + + def test_loc_name(self): + # GH 3880 + df = DataFrame([[1, 1], [1, 1]]) + df.index.name = "index_name" + result = df.iloc[[0, 1]].index.name + assert result == "index_name" + + result = df.loc[[0, 1]].index.name + assert result == "index_name" + + def test_loc_empty_list_indexer_is_ok(self): + df = DataFrame( + np.ones((5, 2)), + index=Index([f"i-{i}" for i in range(5)], name="a"), + columns=Index([f"i-{i}" for i in range(2)], name="a"), + ) + # vertical empty + tm.assert_frame_equal( + df.loc[:, []], df.iloc[:, :0], check_index_type=True, check_column_type=True + ) + # horizontal empty + tm.assert_frame_equal( + df.loc[[], :], df.iloc[:0, :], check_index_type=True, check_column_type=True + ) + # horizontal empty + tm.assert_frame_equal( + df.loc[[]], df.iloc[:0, :], check_index_type=True, check_column_type=True + ) + + def test_identity_slice_returns_new_object( + self, using_copy_on_write, warn_copy_on_write + ): + # GH13873 + + original_df = DataFrame({"a": [1, 2, 3]}) + sliced_df = original_df.loc[:] + assert sliced_df is not original_df + assert original_df[:] is not original_df + assert original_df.loc[:, :] is not original_df + + # should be a shallow copy + assert np.shares_memory(original_df["a"]._values, sliced_df["a"]._values) + + # Setting using .loc[:, "a"] sets inplace so alters both sliced and orig + # depending on CoW + with tm.assert_cow_warning(warn_copy_on_write): + original_df.loc[:, "a"] = [4, 4, 4] + if using_copy_on_write: + assert (sliced_df["a"] == [1, 2, 3]).all() + else: + assert (sliced_df["a"] == 4).all() + + # These should not return copies + df = DataFrame(np.random.default_rng(2).standard_normal((10, 4))) + if using_copy_on_write or warn_copy_on_write: + assert df[0] is not df.loc[:, 0] + else: + assert df[0] is df.loc[:, 0] + + # Same tests for Series + original_series = Series([1, 2, 3, 4, 5, 6]) + sliced_series = original_series.loc[:] + assert sliced_series is not original_series + assert original_series[:] is not original_series + + with tm.assert_cow_warning(warn_copy_on_write): + original_series[:3] = [7, 8, 9] + if using_copy_on_write: + assert all(sliced_series[:3] == [1, 2, 3]) + else: + assert all(sliced_series[:3] == [7, 8, 9]) + + def test_loc_copy_vs_view(self, request, using_copy_on_write): + # GH 15631 + + if not using_copy_on_write: + mark = pytest.mark.xfail(reason="accidental fix reverted - GH37497") + request.applymarker(mark) + x = DataFrame(zip(range(3), range(3)), columns=["a", "b"]) + + y = x.copy() + q = y.loc[:, "a"] + q += 2 + + tm.assert_frame_equal(x, y) + + z = x.copy() + q = z.loc[x.index, "a"] + q += 2 + + tm.assert_frame_equal(x, z) + + def test_loc_uint64(self): + # GH20722 + # Test whether loc accept uint64 max value as index. + umax = np.iinfo("uint64").max + ser = Series([1, 2], index=[umax - 1, umax]) + + result = ser.loc[umax - 1] + expected = ser.iloc[0] + assert result == expected + + result = ser.loc[[umax - 1]] + expected = ser.iloc[[0]] + tm.assert_series_equal(result, expected) + + result = ser.loc[[umax - 1, umax]] + tm.assert_series_equal(result, ser) + + def test_loc_uint64_disallow_negative(self): + # GH#41775 + umax = np.iinfo("uint64").max + ser = Series([1, 2], index=[umax - 1, umax]) + + with pytest.raises(KeyError, match="-1"): + # don't wrap around + ser.loc[-1] + + with pytest.raises(KeyError, match="-1"): + # don't wrap around + ser.loc[[-1]] + + def test_loc_setitem_empty_append_expands_rows(self): + # GH6173, various appends to an empty dataframe + + data = [1, 2, 3] + expected = DataFrame( + {"x": data, "y": np.array([np.nan] * len(data), dtype=object)} + ) + + # appends to fit length of data + df = DataFrame(columns=["x", "y"]) + df.loc[:, "x"] = data + tm.assert_frame_equal(df, expected) + + def test_loc_setitem_empty_append_expands_rows_mixed_dtype(self): + # GH#37932 same as test_loc_setitem_empty_append_expands_rows + # but with mixed dtype so we go through take_split_path + data = [1, 2, 3] + expected = DataFrame( + {"x": data, "y": np.array([np.nan] * len(data), dtype=object)} + ) + + df = DataFrame(columns=["x", "y"]) + df["x"] = df["x"].astype(np.int64) + df.loc[:, "x"] = data + tm.assert_frame_equal(df, expected) + + def test_loc_setitem_empty_append_single_value(self): + # only appends one value + expected = DataFrame({"x": [1.0], "y": [np.nan]}) + df = DataFrame(columns=["x", "y"], dtype=float) + df.loc[0, "x"] = expected.loc[0, "x"] + tm.assert_frame_equal(df, expected) + + def test_loc_setitem_empty_append_raises(self): + # GH6173, various appends to an empty dataframe + + data = [1, 2] + df = DataFrame(columns=["x", "y"]) + df.index = df.index.astype(np.int64) + msg = ( + rf"None of \[Index\(\[0, 1\], dtype='{np.dtype(int)}'\)\] " + r"are in the \[index\]" + ) + with pytest.raises(KeyError, match=msg): + df.loc[[0, 1], "x"] = data + + msg = "setting an array element with a sequence." + with pytest.raises(ValueError, match=msg): + df.loc[0:2, "x"] = data + + def test_indexing_zerodim_np_array(self): + # GH24924 + df = DataFrame([[1, 2], [3, 4]]) + result = df.loc[np.array(0)] + s = Series([1, 2], name=0) + tm.assert_series_equal(result, s) + + def test_series_indexing_zerodim_np_array(self): + # GH24924 + s = Series([1, 2]) + result = s.loc[np.array(0)] + assert result == 1 + + def test_loc_reverse_assignment(self): + # GH26939 + data = [1, 2, 3, 4, 5, 6] + [None] * 4 + expected = Series(data, index=range(2010, 2020)) + + result = Series(index=range(2010, 2020), dtype=np.float64) + result.loc[2015:2010:-1] = [6, 5, 4, 3, 2, 1] + + tm.assert_series_equal(result, expected) + + def test_loc_setitem_str_to_small_float_conversion_type(self, using_infer_string): + # GH#20388 + + col_data = [str(np.random.default_rng(2).random() * 1e-12) for _ in range(5)] + result = DataFrame(col_data, columns=["A"]) + expected = DataFrame(col_data, columns=["A"]) + tm.assert_frame_equal(result, expected) + + # assigning with loc/iloc attempts to set the values inplace, which + # in this case is successful + if using_infer_string: + with pytest.raises(TypeError, match="Invalid value"): + result.loc[result.index, "A"] = [float(x) for x in col_data] + else: + result.loc[result.index, "A"] = [float(x) for x in col_data] + expected = DataFrame(col_data, columns=["A"], dtype=float).astype(object) + tm.assert_frame_equal(result, expected) + + # assigning the entire column using __setitem__ swaps in the new array + # GH#??? + result["A"] = [float(x) for x in col_data] + expected = DataFrame(col_data, columns=["A"], dtype=float) + tm.assert_frame_equal(result, expected) + + def test_loc_getitem_time_object(self, frame_or_series): + rng = date_range("1/1/2000", "1/5/2000", freq="5min") + mask = (rng.hour == 9) & (rng.minute == 30) + + obj = DataFrame( + np.random.default_rng(2).standard_normal((len(rng), 3)), index=rng + ) + obj = tm.get_obj(obj, frame_or_series) + + result = obj.loc[time(9, 30)] + exp = obj.loc[mask] + tm.assert_equal(result, exp) + + chunk = obj.loc["1/4/2000":] + result = chunk.loc[time(9, 30)] + expected = result[-1:] + + # Without resetting the freqs, these are 5 min and 1440 min, respectively + result.index = result.index._with_freq(None) + expected.index = expected.index._with_freq(None) + tm.assert_equal(result, expected) + + @pytest.mark.parametrize("spmatrix_t", ["coo_matrix", "csc_matrix", "csr_matrix"]) + @pytest.mark.parametrize("dtype", [np.int64, np.float64, complex]) + def test_loc_getitem_range_from_spmatrix(self, spmatrix_t, dtype): + sp_sparse = pytest.importorskip("scipy.sparse") + + spmatrix_t = getattr(sp_sparse, spmatrix_t) + + # The bug is triggered by a sparse matrix with purely sparse columns. So the + # recipe below generates a rectangular matrix of dimension (5, 7) where all the + # diagonal cells are ones, meaning the last two columns are purely sparse. + rows, cols = 5, 7 + spmatrix = spmatrix_t(np.eye(rows, cols, dtype=dtype), dtype=dtype) + df = DataFrame.sparse.from_spmatrix(spmatrix) + + # regression test for GH#34526 + itr_idx = range(2, rows) + result = df.loc[itr_idx].values + expected = spmatrix.toarray()[itr_idx] + tm.assert_numpy_array_equal(result, expected) + + # regression test for GH#34540 + result = df.loc[itr_idx].dtypes.values + expected = np.full(cols, SparseDtype(dtype, fill_value=0)) + tm.assert_numpy_array_equal(result, expected) + + def test_loc_getitem_listlike_all_retains_sparse(self): + df = DataFrame({"A": pd.array([0, 0], dtype=SparseDtype("int64"))}) + result = df.loc[[0, 1]] + tm.assert_frame_equal(result, df) + + def test_loc_getitem_sparse_frame(self): + # GH34687 + sp_sparse = pytest.importorskip("scipy.sparse") + + df = DataFrame.sparse.from_spmatrix(sp_sparse.eye(5)) + result = df.loc[range(2)] + expected = DataFrame( + [[1.0, 0.0, 0.0, 0.0, 0.0], [0.0, 1.0, 0.0, 0.0, 0.0]], + dtype=SparseDtype("float64", 0.0), + ) + tm.assert_frame_equal(result, expected) + + result = df.loc[range(2)].loc[range(1)] + expected = DataFrame( + [[1.0, 0.0, 0.0, 0.0, 0.0]], dtype=SparseDtype("float64", 0.0) + ) + tm.assert_frame_equal(result, expected) + + def test_loc_getitem_sparse_series(self): + # GH34687 + s = Series([1.0, 0.0, 0.0, 0.0, 0.0], dtype=SparseDtype("float64", 0.0)) + + result = s.loc[range(2)] + expected = Series([1.0, 0.0], dtype=SparseDtype("float64", 0.0)) + tm.assert_series_equal(result, expected) + + result = s.loc[range(3)].loc[range(2)] + expected = Series([1.0, 0.0], dtype=SparseDtype("float64", 0.0)) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("indexer", ["loc", "iloc"]) + def test_getitem_single_row_sparse_df(self, indexer): + # GH#46406 + df = DataFrame([[1.0, 0.0, 1.5], [0.0, 2.0, 0.0]], dtype=SparseDtype(float)) + result = getattr(df, indexer)[0] + expected = Series([1.0, 0.0, 1.5], dtype=SparseDtype(float), name=0) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("key_type", [iter, np.array, Series, Index]) + def test_loc_getitem_iterable(self, float_frame, key_type): + idx = key_type(["A", "B", "C"]) + result = float_frame.loc[:, idx] + expected = float_frame.loc[:, ["A", "B", "C"]] + tm.assert_frame_equal(result, expected) + + def test_loc_getitem_timedelta_0seconds(self): + # GH#10583 + df = DataFrame(np.random.default_rng(2).normal(size=(10, 4))) + df.index = timedelta_range(start="0s", periods=10, freq="s") + expected = df.loc[Timedelta("0s") :, :] + result = df.loc["0s":, :] + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "val,expected", [(2**63 - 1, Series([1])), (2**63, Series([2]))] + ) + def test_loc_getitem_uint64_scalar(self, val, expected): + # see GH#19399 + df = DataFrame([1, 2], index=[2**63 - 1, 2**63]) + result = df.loc[val] + + expected.name = val + tm.assert_series_equal(result, expected) + + def test_loc_setitem_int_label_with_float_index(self, float_numpy_dtype): + # note labels are floats + dtype = float_numpy_dtype + ser = Series(["a", "b", "c"], index=Index([0, 0.5, 1], dtype=dtype)) + expected = ser.copy() + + ser.loc[1] = "zoo" + expected.iloc[2] = "zoo" + + tm.assert_series_equal(ser, expected) + + @pytest.mark.parametrize( + "indexer, expected", + [ + # The test name is a misnomer in the 0 case as df.index[indexer] + # is a scalar. + (0, [20, 1, 2, 3, 4, 5, 6, 7, 8, 9]), + (slice(4, 8), [0, 1, 2, 3, 20, 20, 20, 20, 8, 9]), + ([3, 5], [0, 1, 2, 20, 4, 20, 6, 7, 8, 9]), + ], + ) + def test_loc_setitem_listlike_with_timedelta64index(self, indexer, expected): + # GH#16637 + tdi = to_timedelta(range(10), unit="s") + df = DataFrame({"x": range(10)}, dtype="int64", index=tdi) + + df.loc[df.index[indexer], "x"] = 20 + + expected = DataFrame( + expected, + index=tdi, + columns=["x"], + dtype="int64", + ) + + tm.assert_frame_equal(expected, df) + + def test_loc_setitem_categorical_values_partial_column_slice(self): + # Assigning a Category to parts of a int/... column uses the values of + # the Categorical + df = DataFrame({"a": [1, 1, 1, 1, 1], "b": list("aaaaa")}) + exp = DataFrame({"a": [1, "b", "b", 1, 1], "b": list("aabba")}) + with tm.assert_produces_warning( + FutureWarning, match="item of incompatible dtype" + ): + df.loc[1:2, "a"] = Categorical(["b", "b"], categories=["a", "b"]) + df.loc[2:3, "b"] = Categorical(["b", "b"], categories=["a", "b"]) + tm.assert_frame_equal(df, exp) + + def test_loc_setitem_single_row_categorical(self, using_infer_string): + # GH#25495 + df = DataFrame({"Alpha": ["a"], "Numeric": [0]}) + categories = Categorical(df["Alpha"], categories=["a", "b", "c"]) + + # pre-2.0 this swapped in a new array, in 2.0 it operates inplace, + # consistent with non-split-path + df.loc[:, "Alpha"] = categories + + result = df["Alpha"] + expected = Series(categories, index=df.index, name="Alpha").astype( + object if not using_infer_string else "str" + ) + tm.assert_series_equal(result, expected) + + # double-check that the non-loc setting retains categoricalness + df["Alpha"] = categories + tm.assert_series_equal(df["Alpha"], Series(categories, name="Alpha")) + + def test_loc_setitem_datetime_coercion(self): + # GH#1048 + df = DataFrame({"c": [Timestamp("2010-10-01")] * 3}) + df.loc[0:1, "c"] = np.datetime64("2008-08-08") + assert Timestamp("2008-08-08") == df.loc[0, "c"] + assert Timestamp("2008-08-08") == df.loc[1, "c"] + with tm.assert_produces_warning(FutureWarning, match="incompatible dtype"): + df.loc[2, "c"] = date(2005, 5, 5) + assert Timestamp("2005-05-05").date() == df.loc[2, "c"] + + @pytest.mark.parametrize("idxer", ["var", ["var"]]) + def test_loc_setitem_datetimeindex_tz(self, idxer, tz_naive_fixture): + # GH#11365 + tz = tz_naive_fixture + idx = date_range(start="2015-07-12", periods=3, freq="h", tz=tz) + expected = DataFrame(1.2, index=idx, columns=["var"]) + # if result started off with object dtype, then the .loc.__setitem__ + # below would retain object dtype + result = DataFrame(index=idx, columns=["var"], dtype=np.float64) + with tm.assert_produces_warning( + FutureWarning if idxer == "var" else None, match="incompatible dtype" + ): + # See https://github.com/pandas-dev/pandas/issues/56223 + result.loc[:, idxer] = expected + tm.assert_frame_equal(result, expected) + + def test_loc_setitem_time_key(self, using_array_manager): + index = date_range("2012-01-01", "2012-01-05", freq="30min") + df = DataFrame( + np.random.default_rng(2).standard_normal((len(index), 5)), index=index + ) + akey = time(12, 0, 0) + bkey = slice(time(13, 0, 0), time(14, 0, 0)) + ainds = [24, 72, 120, 168] + binds = [26, 27, 28, 74, 75, 76, 122, 123, 124, 170, 171, 172] + + result = df.copy() + result.loc[akey] = 0 + result = result.loc[akey] + expected = df.loc[akey].copy() + expected.loc[:] = 0 + if using_array_manager: + # TODO(ArrayManager) we are still overwriting columns + expected = expected.astype(float) + tm.assert_frame_equal(result, expected) + + result = df.copy() + result.loc[akey] = 0 + result.loc[akey] = df.iloc[ainds] + tm.assert_frame_equal(result, df) + + result = df.copy() + result.loc[bkey] = 0 + result = result.loc[bkey] + expected = df.loc[bkey].copy() + expected.loc[:] = 0 + if using_array_manager: + # TODO(ArrayManager) we are still overwriting columns + expected = expected.astype(float) + tm.assert_frame_equal(result, expected) + + result = df.copy() + result.loc[bkey] = 0 + result.loc[bkey] = df.iloc[binds] + tm.assert_frame_equal(result, df) + + @pytest.mark.parametrize("key", ["A", ["A"], ("A", slice(None))]) + def test_loc_setitem_unsorted_multiindex_columns(self, key): + # GH#38601 + mi = MultiIndex.from_tuples([("A", 4), ("B", "3"), ("A", "2")]) + df = DataFrame([[1, 2, 3], [4, 5, 6]], columns=mi) + obj = df.copy() + obj.loc[:, key] = np.zeros((2, 2), dtype="int64") + expected = DataFrame([[0, 2, 0], [0, 5, 0]], columns=mi) + tm.assert_frame_equal(obj, expected) + + df = df.sort_index(axis=1) + df.loc[:, key] = np.zeros((2, 2), dtype="int64") + expected = expected.sort_index(axis=1) + tm.assert_frame_equal(df, expected) + + def test_loc_setitem_uint_drop(self, any_int_numpy_dtype): + # see GH#18311 + # assigning series.loc[0] = 4 changed series.dtype to int + series = Series([1, 2, 3], dtype=any_int_numpy_dtype) + series.loc[0] = 4 + expected = Series([4, 2, 3], dtype=any_int_numpy_dtype) + tm.assert_series_equal(series, expected) + + def test_loc_setitem_td64_non_nano(self): + # GH#14155 + ser = Series(10 * [np.timedelta64(10, "m")]) + ser.loc[[1, 2, 3]] = np.timedelta64(20, "m") + expected = Series(10 * [np.timedelta64(10, "m")]) + expected.loc[[1, 2, 3]] = Timedelta(np.timedelta64(20, "m")) + tm.assert_series_equal(ser, expected) + + def test_loc_setitem_2d_to_1d_raises(self): + data = np.random.default_rng(2).standard_normal((2, 2)) + # float64 dtype to avoid upcast when trying to set float data + ser = Series(range(2), dtype="float64") + + msg = "setting an array element with a sequence." + with pytest.raises(ValueError, match=msg): + ser.loc[range(2)] = data + + with pytest.raises(ValueError, match=msg): + ser.loc[:] = data + + def test_loc_getitem_interval_index(self): + # GH#19977 + index = pd.interval_range(start=0, periods=3) + df = DataFrame( + [[1, 2, 3], [4, 5, 6], [7, 8, 9]], index=index, columns=["A", "B", "C"] + ) + + expected = 1 + result = df.loc[0.5, "A"] + tm.assert_almost_equal(result, expected) + + def test_loc_getitem_interval_index2(self): + # GH#19977 + index = pd.interval_range(start=0, periods=3, closed="both") + df = DataFrame( + [[1, 2, 3], [4, 5, 6], [7, 8, 9]], index=index, columns=["A", "B", "C"] + ) + + index_exp = pd.interval_range(start=0, periods=2, freq=1, closed="both") + expected = Series([1, 4], index=index_exp, name="A") + result = df.loc[1, "A"] + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("tpl", [(1,), (1, 2)]) + def test_loc_getitem_index_single_double_tuples(self, tpl): + # GH#20991 + idx = Index( + [(1,), (1, 2)], + name="A", + tupleize_cols=False, + ) + df = DataFrame(index=idx) + + result = df.loc[[tpl]] + idx = Index([tpl], name="A", tupleize_cols=False) + expected = DataFrame(index=idx) + tm.assert_frame_equal(result, expected) + + def test_loc_getitem_index_namedtuple(self): + IndexType = namedtuple("IndexType", ["a", "b"]) + idx1 = IndexType("foo", "bar") + idx2 = IndexType("baz", "bof") + index = Index([idx1, idx2], name="composite_index", tupleize_cols=False) + df = DataFrame([(1, 2), (3, 4)], index=index, columns=["A", "B"]) + + result = df.loc[IndexType("foo", "bar")]["A"] + assert result == 1 + + def test_loc_setitem_single_column_mixed(self, using_infer_string): + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 3)), + index=["a", "b", "c", "d", "e"], + columns=["foo", "bar", "baz"], + ) + df["str"] = "qux" + df.loc[df.index[::2], "str"] = np.nan + expected = Series( + [np.nan, "qux", np.nan, "qux", np.nan], + dtype=object if not using_infer_string else "str", + ).values + tm.assert_almost_equal(df["str"].values, expected) + + def test_loc_setitem_cast2(self): + # GH#7704 + # dtype conversion on setting + df = DataFrame(np.random.default_rng(2).random((30, 3)), columns=tuple("ABC")) + df["event"] = np.nan + with tm.assert_produces_warning( + FutureWarning, match="item of incompatible dtype" + ): + df.loc[10, "event"] = "foo" + result = df.dtypes + expected = Series( + [np.dtype("float64")] * 3 + [np.dtype("object")], + index=["A", "B", "C", "event"], + ) + tm.assert_series_equal(result, expected) + + def test_loc_setitem_cast3(self): + # Test that data type is preserved . GH#5782 + df = DataFrame({"one": np.arange(6, dtype=np.int8)}) + df.loc[1, "one"] = 6 + assert df.dtypes.one == np.dtype(np.int8) + df.one = np.int8(7) + assert df.dtypes.one == np.dtype(np.int8) + + def test_loc_setitem_range_key(self, frame_or_series): + # GH#45479 don't treat range key as positional + obj = frame_or_series(range(5), index=[3, 4, 1, 0, 2]) + + values = [9, 10, 11] + if obj.ndim == 2: + values = [[9], [10], [11]] + + obj.loc[range(3)] = values + + expected = frame_or_series([0, 1, 10, 9, 11], index=obj.index) + tm.assert_equal(obj, expected) + + def test_loc_setitem_numpy_frame_categorical_value(self): + # GH#52927 + df = DataFrame({"a": [1, 1, 1, 1, 1], "b": ["a", "a", "a", "a", "a"]}) + df.loc[1:2, "a"] = Categorical([2, 2], categories=[1, 2]) + + expected = DataFrame({"a": [1, 2, 2, 1, 1], "b": ["a", "a", "a", "a", "a"]}) + tm.assert_frame_equal(df, expected) + + +class TestLocWithEllipsis: + @pytest.fixture(params=[tm.loc, tm.iloc]) + def indexer(self, request): + # Test iloc while we're here + return request.param + + @pytest.fixture + def obj(self, series_with_simple_index, frame_or_series): + obj = series_with_simple_index + if frame_or_series is not Series: + obj = obj.to_frame() + return obj + + def test_loc_iloc_getitem_ellipsis(self, obj, indexer): + result = indexer(obj)[...] + tm.assert_equal(result, obj) + + @pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") + def test_loc_iloc_getitem_leading_ellipses(self, series_with_simple_index, indexer): + obj = series_with_simple_index + key = 0 if (indexer is tm.iloc or len(obj) == 0) else obj.index[0] + + if indexer is tm.loc and obj.index.inferred_type == "boolean": + # passing [False] will get interpreted as a boolean mask + # TODO: should it? unambiguous when lengths dont match? + return + if indexer is tm.loc and isinstance(obj.index, MultiIndex): + msg = "MultiIndex does not support indexing with Ellipsis" + with pytest.raises(NotImplementedError, match=msg): + result = indexer(obj)[..., [key]] + + elif len(obj) != 0: + result = indexer(obj)[..., [key]] + expected = indexer(obj)[[key]] + tm.assert_series_equal(result, expected) + + key2 = 0 if indexer is tm.iloc else obj.name + df = obj.to_frame() + result = indexer(df)[..., [key2]] + expected = indexer(df)[:, [key2]] + tm.assert_frame_equal(result, expected) + + def test_loc_iloc_getitem_ellipses_only_one_ellipsis(self, obj, indexer): + # GH37750 + key = 0 if (indexer is tm.iloc or len(obj) == 0) else obj.index[0] + + with pytest.raises(IndexingError, match=_one_ellipsis_message): + indexer(obj)[..., ...] + + with pytest.raises(IndexingError, match=_one_ellipsis_message): + indexer(obj)[..., [key], ...] + + with pytest.raises(IndexingError, match=_one_ellipsis_message): + indexer(obj)[..., ..., key] + + # one_ellipsis_message takes precedence over "Too many indexers" + # only when the first key is Ellipsis + with pytest.raises(IndexingError, match="Too many indexers"): + indexer(obj)[key, ..., ...] + + +class TestLocWithMultiIndex: + @pytest.mark.parametrize( + "keys, expected", + [ + (["b", "a"], [["b", "b", "a", "a"], [1, 2, 1, 2]]), + (["a", "b"], [["a", "a", "b", "b"], [1, 2, 1, 2]]), + ((["a", "b"], [1, 2]), [["a", "a", "b", "b"], [1, 2, 1, 2]]), + ((["a", "b"], [2, 1]), [["a", "a", "b", "b"], [2, 1, 2, 1]]), + ((["b", "a"], [2, 1]), [["b", "b", "a", "a"], [2, 1, 2, 1]]), + ((["b", "a"], [1, 2]), [["b", "b", "a", "a"], [1, 2, 1, 2]]), + ((["c", "a"], [2, 1]), [["c", "a", "a"], [1, 2, 1]]), + ], + ) + @pytest.mark.parametrize("dim", ["index", "columns"]) + def test_loc_getitem_multilevel_index_order(self, dim, keys, expected): + # GH#22797 + # Try to respect order of keys given for MultiIndex.loc + kwargs = {dim: [["c", "a", "a", "b", "b"], [1, 1, 2, 1, 2]]} + df = DataFrame(np.arange(25).reshape(5, 5), **kwargs) + exp_index = MultiIndex.from_arrays(expected) + if dim == "index": + res = df.loc[keys, :] + tm.assert_index_equal(res.index, exp_index) + elif dim == "columns": + res = df.loc[:, keys] + tm.assert_index_equal(res.columns, exp_index) + + def test_loc_preserve_names(self, multiindex_year_month_day_dataframe_random_data): + ymd = multiindex_year_month_day_dataframe_random_data + + result = ymd.loc[2000] + result2 = ymd["A"].loc[2000] + assert result.index.names == ymd.index.names[1:] + assert result2.index.names == ymd.index.names[1:] + + result = ymd.loc[2000, 2] + result2 = ymd["A"].loc[2000, 2] + assert result.index.name == ymd.index.names[2] + assert result2.index.name == ymd.index.names[2] + + def test_loc_getitem_multiindex_nonunique_len_zero(self): + # GH#13691 + mi = MultiIndex.from_product([[0], [1, 1]]) + ser = Series(0, index=mi) + + res = ser.loc[[]] + + expected = ser[:0] + tm.assert_series_equal(res, expected) + + res2 = ser.loc[ser.iloc[0:0]] + tm.assert_series_equal(res2, expected) + + def test_loc_getitem_access_none_value_in_multiindex(self): + # GH#34318: test that you can access a None value using .loc + # through a Multiindex + + ser = Series([None], MultiIndex.from_arrays([["Level1"], ["Level2"]])) + result = ser.loc[("Level1", "Level2")] + assert result is None + + midx = MultiIndex.from_product([["Level1"], ["Level2_a", "Level2_b"]]) + ser = Series([None] * len(midx), dtype=object, index=midx) + result = ser.loc[("Level1", "Level2_a")] + assert result is None + + ser = Series([1] * len(midx), dtype=object, index=midx) + result = ser.loc[("Level1", "Level2_a")] + assert result == 1 + + def test_loc_setitem_multiindex_slice(self): + # GH 34870 + + index = MultiIndex.from_tuples( + zip( + ["bar", "bar", "baz", "baz", "foo", "foo", "qux", "qux"], + ["one", "two", "one", "two", "one", "two", "one", "two"], + ), + names=["first", "second"], + ) + + result = Series([1, 1, 1, 1, 1, 1, 1, 1], index=index) + result.loc[("baz", "one"):("foo", "two")] = 100 + + expected = Series([1, 1, 100, 100, 100, 100, 1, 1], index=index) + + tm.assert_series_equal(result, expected) + + def test_loc_getitem_slice_datetime_objs_with_datetimeindex(self): + times = date_range("2000-01-01", freq="10min", periods=100000) + ser = Series(range(100000), times) + result = ser.loc[datetime(1900, 1, 1) : datetime(2100, 1, 1)] + tm.assert_series_equal(result, ser) + + def test_loc_getitem_datetime_string_with_datetimeindex(self): + # GH 16710 + df = DataFrame( + {"a": range(10), "b": range(10)}, + index=date_range("2010-01-01", "2010-01-10"), + ) + result = df.loc[["2010-01-01", "2010-01-05"], ["a", "b"]] + expected = DataFrame( + {"a": [0, 4], "b": [0, 4]}, + index=DatetimeIndex(["2010-01-01", "2010-01-05"]), + ) + tm.assert_frame_equal(result, expected) + + def test_loc_getitem_sorted_index_level_with_duplicates(self): + # GH#4516 sorting a MultiIndex with duplicates and multiple dtypes + mi = MultiIndex.from_tuples( + [ + ("foo", "bar"), + ("foo", "bar"), + ("bah", "bam"), + ("bah", "bam"), + ("foo", "bar"), + ("bah", "bam"), + ], + names=["A", "B"], + ) + df = DataFrame( + [ + [1.0, 1], + [2.0, 2], + [3.0, 3], + [4.0, 4], + [5.0, 5], + [6.0, 6], + ], + index=mi, + columns=["C", "D"], + ) + df = df.sort_index(level=0) + + expected = DataFrame( + [[1.0, 1], [2.0, 2], [5.0, 5]], columns=["C", "D"], index=mi.take([0, 1, 4]) + ) + + result = df.loc[("foo", "bar")] + tm.assert_frame_equal(result, expected) + + def test_additional_element_to_categorical_series_loc(self): + # GH#47677 + result = Series(["a", "b", "c"], dtype="category") + result.loc[3] = 0 + expected = Series(["a", "b", "c", 0], dtype="object") + tm.assert_series_equal(result, expected) + + def test_additional_categorical_element_loc(self): + # GH#47677 + result = Series(["a", "b", "c"], dtype="category") + result.loc[3] = "a" + expected = Series(["a", "b", "c", "a"], dtype="category") + tm.assert_series_equal(result, expected) + + def test_loc_set_nan_in_categorical_series(self, any_numeric_ea_dtype): + # GH#47677 + srs = Series( + [1, 2, 3], + dtype=CategoricalDtype(Index([1, 2, 3], dtype=any_numeric_ea_dtype)), + ) + # enlarge + srs.loc[3] = np.nan + expected = Series( + [1, 2, 3, np.nan], + dtype=CategoricalDtype(Index([1, 2, 3], dtype=any_numeric_ea_dtype)), + ) + tm.assert_series_equal(srs, expected) + # set into + srs.loc[1] = np.nan + expected = Series( + [1, np.nan, 3, np.nan], + dtype=CategoricalDtype(Index([1, 2, 3], dtype=any_numeric_ea_dtype)), + ) + tm.assert_series_equal(srs, expected) + + @pytest.mark.parametrize("na", (np.nan, pd.NA, None, pd.NaT)) + def test_loc_consistency_series_enlarge_set_into(self, na): + # GH#47677 + srs_enlarge = Series(["a", "b", "c"], dtype="category") + srs_enlarge.loc[3] = na + + srs_setinto = Series(["a", "b", "c", "a"], dtype="category") + srs_setinto.loc[3] = na + + tm.assert_series_equal(srs_enlarge, srs_setinto) + expected = Series(["a", "b", "c", na], dtype="category") + tm.assert_series_equal(srs_enlarge, expected) + + def test_loc_getitem_preserves_index_level_category_dtype(self): + # GH#15166 + df = DataFrame( + data=np.arange(2, 22, 2), + index=MultiIndex( + levels=[CategoricalIndex(["a", "b"]), range(10)], + codes=[[0] * 5 + [1] * 5, range(10)], + names=["Index1", "Index2"], + ), + ) + + expected = CategoricalIndex( + ["a", "b"], + categories=["a", "b"], + ordered=False, + name="Index1", + dtype="category", + ) + + result = df.index.levels[0] + tm.assert_index_equal(result, expected) + + result = df.loc[["a"]].index.levels[0] + tm.assert_index_equal(result, expected) + + @pytest.mark.parametrize("lt_value", [30, 10]) + def test_loc_multiindex_levels_contain_values_not_in_index_anymore(self, lt_value): + # GH#41170 + df = DataFrame({"a": [12, 23, 34, 45]}, index=[list("aabb"), [0, 1, 2, 3]]) + with pytest.raises(KeyError, match=r"\['b'\] not in index"): + df.loc[df["a"] < lt_value, :].loc[["b"], :] + + def test_loc_multiindex_null_slice_na_level(self): + # GH#42055 + lev1 = np.array([np.nan, np.nan]) + lev2 = ["bar", "baz"] + mi = MultiIndex.from_arrays([lev1, lev2]) + ser = Series([0, 1], index=mi) + result = ser.loc[:, "bar"] + + # TODO: should we have name="bar"? + expected = Series([0], index=[np.nan]) + tm.assert_series_equal(result, expected) + + def test_loc_drops_level(self): + # Based on test_series_varied_multiindex_alignment, where + # this used to fail to drop the first level + mi = MultiIndex.from_product( + [list("ab"), list("xy"), [1, 2]], names=["ab", "xy", "num"] + ) + ser = Series(range(8), index=mi) + + loc_result = ser.loc["a", :, :] + expected = ser.index.droplevel(0)[:4] + tm.assert_index_equal(loc_result.index, expected) + + +class TestLocSetitemWithExpansion: + def test_loc_setitem_with_expansion_large_dataframe(self, monkeypatch): + # GH#10692 + size_cutoff = 50 + with monkeypatch.context(): + monkeypatch.setattr(libindex, "_SIZE_CUTOFF", size_cutoff) + result = DataFrame({"x": range(size_cutoff)}, dtype="int64") + result.loc[size_cutoff] = size_cutoff + expected = DataFrame({"x": range(size_cutoff + 1)}, dtype="int64") + tm.assert_frame_equal(result, expected) + + def test_loc_setitem_empty_series(self): + # GH#5226 + + # partially set with an empty object series + ser = Series(dtype=object) + ser.loc[1] = 1 + tm.assert_series_equal(ser, Series([1], index=[1])) + ser.loc[3] = 3 + tm.assert_series_equal(ser, Series([1, 3], index=[1, 3])) + + def test_loc_setitem_empty_series_float(self): + # GH#5226 + + # partially set with an empty object series + ser = Series(dtype=object) + ser.loc[1] = 1.0 + tm.assert_series_equal(ser, Series([1.0], index=[1])) + ser.loc[3] = 3.0 + tm.assert_series_equal(ser, Series([1.0, 3.0], index=[1, 3])) + + def test_loc_setitem_empty_series_str_idx(self): + # GH#5226 + + # partially set with an empty object series + ser = Series(dtype=object) + ser.loc["foo"] = 1 + tm.assert_series_equal(ser, Series([1], index=Index(["foo"]))) + ser.loc["bar"] = 3 + tm.assert_series_equal(ser, Series([1, 3], index=Index(["foo", "bar"]))) + ser.loc[3] = 4 + tm.assert_series_equal(ser, Series([1, 3, 4], index=Index(["foo", "bar", 3]))) + + def test_loc_setitem_incremental_with_dst(self): + # GH#20724 + base = datetime(2015, 11, 1, tzinfo=gettz("US/Pacific")) + idxs = [base + timedelta(seconds=i * 900) for i in range(16)] + result = Series([0], index=[idxs[0]]) + for ts in idxs: + result.loc[ts] = 1 + expected = Series(1, index=idxs) + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize( + "conv", + [ + lambda x: x, + lambda x: x.to_datetime64(), + lambda x: x.to_pydatetime(), + lambda x: np.datetime64(x), + ], + ids=["self", "to_datetime64", "to_pydatetime", "np.datetime64"], + ) + def test_loc_setitem_datetime_keys_cast(self, conv, using_infer_string): + # GH#9516, GH#51363 changed in 3.0 to not cast on Index.insert + dt1 = Timestamp("20130101 09:00:00") + dt2 = Timestamp("20130101 10:00:00") + df = DataFrame() + df.loc[conv(dt1), "one"] = 100 + df.loc[conv(dt2), "one"] = 200 + + # the dtype constructed by Index([..]) does not yet follow the unit + # of the input on 2.3.x -> so checking this is datetime64, but then + # specifying the exact dtype in the expected result + if using_infer_string: + assert df.index.dtype.kind == "M" + exp_dtype = df.index.dtype + else: + exp_dtype = "datetime64[ns]" + expected = DataFrame( + {"one": [100.0, 200.0]}, + index=Index([dt1, dt2], dtype=exp_dtype), + columns=Index(["one"]), + ) + tm.assert_frame_equal(df, expected) + + def test_loc_setitem_categorical_column_retains_dtype(self, ordered): + # GH16360 + result = DataFrame({"A": [1]}) + result.loc[:, "B"] = Categorical(["b"], ordered=ordered) + expected = DataFrame({"A": [1], "B": Categorical(["b"], ordered=ordered)}) + tm.assert_frame_equal(result, expected) + + def test_loc_setitem_with_expansion_and_existing_dst(self): + # GH#18308 + start = Timestamp("2017-10-29 00:00:00+0200", tz="Europe/Madrid") + end = Timestamp("2017-10-29 03:00:00+0100", tz="Europe/Madrid") + ts = Timestamp("2016-10-10 03:00:00", tz="Europe/Madrid") + idx = date_range(start, end, inclusive="left", freq="h") + assert ts not in idx # i.e. result.loc setitem is with-expansion + + result = DataFrame(index=idx, columns=["value"]) + result.loc[ts, "value"] = 12 + expected = DataFrame( + [np.nan] * len(idx) + [12], + index=idx.append(DatetimeIndex([ts])), + columns=["value"], + dtype=object, + ) + tm.assert_frame_equal(result, expected) + + def test_setitem_with_expansion(self): + # indexing - setting an element + df = DataFrame( + data=to_datetime(["2015-03-30 20:12:32", "2015-03-12 00:11:11"]), + columns=["time"], + ) + df["new_col"] = ["new", "old"] + df.time = df.set_index("time").index.tz_localize("UTC") + v = df[df.new_col == "new"].set_index("time").index.tz_convert("US/Pacific") + + # pre-2.0 trying to set a single element on a part of a different + # timezone converted to object; in 2.0 it retains dtype + df2 = df.copy() + df2.loc[df2.new_col == "new", "time"] = v + + expected = Series([v[0].tz_convert("UTC"), df.loc[1, "time"]], name="time") + tm.assert_series_equal(df2.time, expected) + + v = df.loc[df.new_col == "new", "time"] + Timedelta("1s") + df.loc[df.new_col == "new", "time"] = v + tm.assert_series_equal(df.loc[df.new_col == "new", "time"], v) + + def test_loc_setitem_with_expansion_inf_upcast_empty(self): + # Test with np.inf in columns + df = DataFrame() + df.loc[0, 0] = 1 + df.loc[1, 1] = 2 + df.loc[0, np.inf] = 3 + + result = df.columns + expected = Index([0, 1, np.inf], dtype=np.float64) + tm.assert_index_equal(result, expected) + + @pytest.mark.filterwarnings("ignore:indexing past lexsort depth") + @pytest.mark.parametrize("has_ref", [True, False]) + def test_loc_setitem_with_expansion_nonunique_index(self, index, has_ref): + # GH#40096 + if not len(index): + pytest.skip("Not relevant for empty Index") + + index = index.repeat(2) # ensure non-unique + N = len(index) + arr = np.arange(N).astype(np.int64) + + orig = DataFrame(arr, index=index, columns=[0]) + + # key that will requiring object-dtype casting in the index + key = "kapow" + assert key not in index # otherwise test is invalid + # TODO: using a tuple key breaks here in many cases + + exp_index = index.insert(len(index), key) + if isinstance(index, MultiIndex): + assert exp_index[-1][0] == key + else: + assert exp_index[-1] == key + exp_data = np.arange(N + 1).astype(np.float64) + expected = DataFrame(exp_data, index=exp_index, columns=[0]) + + # Add new row, but no new columns + df = orig.copy() + if has_ref: + view = df[:] + df.loc[key, 0] = N + tm.assert_frame_equal(df, expected) + + # add new row on a Series + ser = orig.copy()[0] + if has_ref: + view = ser[:] + ser.loc[key] = N + # the series machinery lets us preserve int dtype instead of float + expected = expected[0].astype(np.int64) + tm.assert_series_equal(ser, expected) + + # add new row and new column + df = orig.copy() + if has_ref: + view = df[:] # noqa: F841 + df.loc[key, 1] = N + expected = DataFrame( + {0: list(arr) + [np.nan], 1: [np.nan] * N + [float(N)]}, + index=exp_index, + ) + tm.assert_frame_equal(df, expected) + + @pytest.mark.parametrize( + "dtype", ["Int32", "Int64", "UInt32", "UInt64", "Float32", "Float64"] + ) + def test_loc_setitem_with_expansion_preserves_nullable_int(self, dtype): + # GH#42099 + ser = Series([0, 1, 2, 3], dtype=dtype) + df = DataFrame({"data": ser}) + + result = DataFrame(index=df.index) + result.loc[df.index, "data"] = ser + + tm.assert_frame_equal(result, df, check_column_type=False) + + result = DataFrame(index=df.index) + result.loc[df.index, "data"] = ser._values + tm.assert_frame_equal(result, df, check_column_type=False) + + def test_loc_setitem_ea_not_full_column(self): + # GH#39163 + df = DataFrame({"A": range(5)}) + + val = date_range("2016-01-01", periods=3, tz="US/Pacific") + + df.loc[[0, 1, 2], "B"] = val + + bex = val.append(DatetimeIndex([pd.NaT, pd.NaT], dtype=val.dtype)) + expected = DataFrame({"A": range(5), "B": bex}) + assert expected.dtypes["B"] == val.dtype + tm.assert_frame_equal(df, expected) + + +class TestLocCallable: + def test_frame_loc_getitem_callable(self): + # GH#11485 + df = DataFrame({"A": [1, 2, 3, 4], "B": list("aabb"), "C": [1, 2, 3, 4]}) + # iloc cannot use boolean Series (see GH3635) + + # return bool indexer + res = df.loc[lambda x: x.A > 2] + tm.assert_frame_equal(res, df.loc[df.A > 2]) + + res = df.loc[lambda x: x.B == "b", :] + tm.assert_frame_equal(res, df.loc[df.B == "b", :]) + + res = df.loc[lambda x: x.A > 2, lambda x: x.columns == "B"] + tm.assert_frame_equal(res, df.loc[df.A > 2, [False, True, False]]) + + res = df.loc[lambda x: x.A > 2, lambda x: "B"] + tm.assert_series_equal(res, df.loc[df.A > 2, "B"]) + + res = df.loc[lambda x: x.A > 2, lambda x: ["A", "B"]] + tm.assert_frame_equal(res, df.loc[df.A > 2, ["A", "B"]]) + + res = df.loc[lambda x: x.A == 2, lambda x: ["A", "B"]] + tm.assert_frame_equal(res, df.loc[df.A == 2, ["A", "B"]]) + + # scalar + res = df.loc[lambda x: 1, lambda x: "A"] + assert res == df.loc[1, "A"] + + def test_frame_loc_getitem_callable_mixture(self): + # GH#11485 + df = DataFrame({"A": [1, 2, 3, 4], "B": list("aabb"), "C": [1, 2, 3, 4]}) + + res = df.loc[lambda x: x.A > 2, ["A", "B"]] + tm.assert_frame_equal(res, df.loc[df.A > 2, ["A", "B"]]) + + res = df.loc[[2, 3], lambda x: ["A", "B"]] + tm.assert_frame_equal(res, df.loc[[2, 3], ["A", "B"]]) + + res = df.loc[3, lambda x: ["A", "B"]] + tm.assert_series_equal(res, df.loc[3, ["A", "B"]]) + + def test_frame_loc_getitem_callable_labels(self): + # GH#11485 + df = DataFrame({"X": [1, 2, 3, 4], "Y": list("aabb")}, index=list("ABCD")) + + # return label + res = df.loc[lambda x: ["A", "C"]] + tm.assert_frame_equal(res, df.loc[["A", "C"]]) + + res = df.loc[lambda x: ["A", "C"], :] + tm.assert_frame_equal(res, df.loc[["A", "C"], :]) + + res = df.loc[lambda x: ["A", "C"], lambda x: "X"] + tm.assert_series_equal(res, df.loc[["A", "C"], "X"]) + + res = df.loc[lambda x: ["A", "C"], lambda x: ["X"]] + tm.assert_frame_equal(res, df.loc[["A", "C"], ["X"]]) + + # mixture + res = df.loc[["A", "C"], lambda x: "X"] + tm.assert_series_equal(res, df.loc[["A", "C"], "X"]) + + res = df.loc[["A", "C"], lambda x: ["X"]] + tm.assert_frame_equal(res, df.loc[["A", "C"], ["X"]]) + + res = df.loc[lambda x: ["A", "C"], "X"] + tm.assert_series_equal(res, df.loc[["A", "C"], "X"]) + + res = df.loc[lambda x: ["A", "C"], ["X"]] + tm.assert_frame_equal(res, df.loc[["A", "C"], ["X"]]) + + def test_frame_loc_setitem_callable(self): + # GH#11485 + df = DataFrame( + {"X": [1, 2, 3, 4], "Y": Series(list("aabb"), dtype=object)}, + index=list("ABCD"), + ) + + # return label + res = df.copy() + res.loc[lambda x: ["A", "C"]] = -20 + exp = df.copy() + exp.loc[["A", "C"]] = -20 + tm.assert_frame_equal(res, exp) + + res = df.copy() + res.loc[lambda x: ["A", "C"], :] = 20 + exp = df.copy() + exp.loc[["A", "C"], :] = 20 + tm.assert_frame_equal(res, exp) + + res = df.copy() + res.loc[lambda x: ["A", "C"], lambda x: "X"] = -1 + exp = df.copy() + exp.loc[["A", "C"], "X"] = -1 + tm.assert_frame_equal(res, exp) + + res = df.copy() + res.loc[lambda x: ["A", "C"], lambda x: ["X"]] = [5, 10] + exp = df.copy() + exp.loc[["A", "C"], ["X"]] = [5, 10] + tm.assert_frame_equal(res, exp) + + # mixture + res = df.copy() + res.loc[["A", "C"], lambda x: "X"] = np.array([-1, -2]) + exp = df.copy() + exp.loc[["A", "C"], "X"] = np.array([-1, -2]) + tm.assert_frame_equal(res, exp) + + res = df.copy() + res.loc[["A", "C"], lambda x: ["X"]] = 10 + exp = df.copy() + exp.loc[["A", "C"], ["X"]] = 10 + tm.assert_frame_equal(res, exp) + + res = df.copy() + res.loc[lambda x: ["A", "C"], "X"] = -2 + exp = df.copy() + exp.loc[["A", "C"], "X"] = -2 + tm.assert_frame_equal(res, exp) + + res = df.copy() + res.loc[lambda x: ["A", "C"], ["X"]] = -4 + exp = df.copy() + exp.loc[["A", "C"], ["X"]] = -4 + tm.assert_frame_equal(res, exp) + + +class TestPartialStringSlicing: + def test_loc_getitem_partial_string_slicing_datetimeindex(self): + # GH#35509 + df = DataFrame( + {"col1": ["a", "b", "c"], "col2": [1, 2, 3]}, + index=to_datetime(["2020-08-01", "2020-07-02", "2020-08-05"]), + ) + expected = DataFrame( + {"col1": ["a", "c"], "col2": [1, 3]}, + index=to_datetime(["2020-08-01", "2020-08-05"]), + ) + result = df.loc["2020-08"] + tm.assert_frame_equal(result, expected) + + def test_loc_getitem_partial_string_slicing_with_periodindex(self): + pi = pd.period_range(start="2017-01-01", end="2018-01-01", freq="M") + ser = pi.to_series() + result = ser.loc[:"2017-12"] + expected = ser.iloc[:-1] + + tm.assert_series_equal(result, expected) + + def test_loc_getitem_partial_string_slicing_with_timedeltaindex(self): + ix = timedelta_range(start="1 day", end="2 days", freq="1h") + ser = ix.to_series() + result = ser.loc[:"1 days"] + expected = ser.iloc[:-1] + + tm.assert_series_equal(result, expected) + + def test_loc_getitem_str_timedeltaindex(self): + # GH#16896 + df = DataFrame({"x": range(3)}, index=to_timedelta(range(3), unit="days")) + expected = df.iloc[0] + sliced = df.loc["0 days"] + tm.assert_series_equal(sliced, expected) + + @pytest.mark.parametrize("indexer_end", [None, "2020-01-02 23:59:59.999999999"]) + def test_loc_getitem_partial_slice_non_monotonicity( + self, tz_aware_fixture, indexer_end, frame_or_series + ): + # GH#33146 + obj = frame_or_series( + [1] * 5, + index=DatetimeIndex( + [ + Timestamp("2019-12-30"), + Timestamp("2020-01-01"), + Timestamp("2019-12-25"), + Timestamp("2020-01-02 23:59:59.999999999"), + Timestamp("2019-12-19"), + ], + tz=tz_aware_fixture, + ), + ) + expected = frame_or_series( + [1] * 2, + index=DatetimeIndex( + [ + Timestamp("2020-01-01"), + Timestamp("2020-01-02 23:59:59.999999999"), + ], + tz=tz_aware_fixture, + ), + ) + indexer = slice("2020-01-01", indexer_end) + + result = obj[indexer] + tm.assert_equal(result, expected) + + result = obj.loc[indexer] + tm.assert_equal(result, expected) + + +class TestLabelSlicing: + def test_loc_getitem_slicing_datetimes_frame(self): + # GH#7523 + + # unique + df_unique = DataFrame( + np.arange(4.0, dtype="float64"), + index=[datetime(2001, 1, i, 10, 00) for i in [1, 2, 3, 4]], + ) + + # duplicates + df_dups = DataFrame( + np.arange(5.0, dtype="float64"), + index=[datetime(2001, 1, i, 10, 00) for i in [1, 2, 2, 3, 4]], + ) + + for df in [df_unique, df_dups]: + result = df.loc[datetime(2001, 1, 1, 10) :] + tm.assert_frame_equal(result, df) + result = df.loc[: datetime(2001, 1, 4, 10)] + tm.assert_frame_equal(result, df) + result = df.loc[datetime(2001, 1, 1, 10) : datetime(2001, 1, 4, 10)] + tm.assert_frame_equal(result, df) + + result = df.loc[datetime(2001, 1, 1, 11) :] + expected = df.iloc[1:] + tm.assert_frame_equal(result, expected) + result = df.loc["20010101 11":] + tm.assert_frame_equal(result, expected) + + def test_loc_getitem_label_slice_across_dst(self): + # GH#21846 + idx = date_range( + "2017-10-29 01:30:00", tz="Europe/Berlin", periods=5, freq="30 min" + ) + series2 = Series([0, 1, 2, 3, 4], index=idx) + + t_1 = Timestamp("2017-10-29 02:30:00+02:00", tz="Europe/Berlin") + t_2 = Timestamp("2017-10-29 02:00:00+01:00", tz="Europe/Berlin") + result = series2.loc[t_1:t_2] + expected = Series([2, 3], index=idx[2:4]) + tm.assert_series_equal(result, expected) + + result = series2[t_1] + expected = 2 + assert result == expected + + @pytest.mark.parametrize( + "index", + [ + pd.period_range(start="2017-01-01", end="2018-01-01", freq="M"), + timedelta_range(start="1 day", end="2 days", freq="1h"), + ], + ) + def test_loc_getitem_label_slice_period_timedelta(self, index): + ser = index.to_series() + result = ser.loc[: index[-2]] + expected = ser.iloc[:-1] + + tm.assert_series_equal(result, expected) + + def test_loc_getitem_slice_floats_inexact(self): + index = [52195.504153, 52196.303147, 52198.369883] + df = DataFrame(np.random.default_rng(2).random((3, 2)), index=index) + + s1 = df.loc[52195.1:52196.5] + assert len(s1) == 2 + + s1 = df.loc[52195.1:52196.6] + assert len(s1) == 2 + + s1 = df.loc[52195.1:52198.9] + assert len(s1) == 3 + + def test_loc_getitem_float_slice_floatindex(self, float_numpy_dtype): + dtype = float_numpy_dtype + ser = Series( + np.random.default_rng(2).random(10), index=np.arange(10, 20, dtype=dtype) + ) + + assert len(ser.loc[12.0:]) == 8 + assert len(ser.loc[12.5:]) == 7 + + idx = np.arange(10, 20, dtype=dtype) + idx[2] = 12.2 + ser.index = idx + assert len(ser.loc[12.0:]) == 8 + assert len(ser.loc[12.5:]) == 7 + + @pytest.mark.parametrize( + "start,stop, expected_slice", + [ + [np.timedelta64(0, "ns"), None, slice(0, 11)], + [np.timedelta64(1, "D"), np.timedelta64(6, "D"), slice(1, 7)], + [None, np.timedelta64(4, "D"), slice(0, 5)], + ], + ) + def test_loc_getitem_slice_label_td64obj(self, start, stop, expected_slice): + # GH#20393 + ser = Series(range(11), timedelta_range("0 days", "10 days")) + result = ser.loc[slice(start, stop)] + expected = ser.iloc[expected_slice] + tm.assert_series_equal(result, expected) + + @pytest.mark.parametrize("start", ["2018", "2020"]) + def test_loc_getitem_slice_unordered_dt_index(self, frame_or_series, start): + obj = frame_or_series( + [1, 2, 3], + index=[Timestamp("2016"), Timestamp("2019"), Timestamp("2017")], + ) + with pytest.raises( + KeyError, match="Value based partial slicing on non-monotonic" + ): + obj.loc[start:"2022"] + + @pytest.mark.parametrize("value", [1, 1.5]) + def test_loc_getitem_slice_labels_int_in_object_index(self, frame_or_series, value): + # GH: 26491 + obj = frame_or_series(range(4), index=[value, "first", 2, "third"]) + result = obj.loc[value:"third"] + expected = frame_or_series(range(4), index=[value, "first", 2, "third"]) + tm.assert_equal(result, expected) + + def test_loc_getitem_slice_columns_mixed_dtype(self): + # GH: 20975 + df = DataFrame({"test": 1, 1: 2, 2: 3}, index=[0]) + expected = DataFrame( + data=[[2, 3]], index=[0], columns=Index([1, 2], dtype=object) + ) + tm.assert_frame_equal(df.loc[:, 1:], expected) + + +class TestLocBooleanLabelsAndSlices: + @pytest.mark.parametrize("bool_value", [True, False]) + def test_loc_bool_incompatible_index_raises( + self, index, frame_or_series, bool_value + ): + # GH20432 + message = f"{bool_value}: boolean label can not be used without a boolean index" + if index.inferred_type != "boolean": + obj = frame_or_series(index=index, dtype="object") + with pytest.raises(KeyError, match=message): + obj.loc[bool_value] + + @pytest.mark.parametrize("bool_value", [True, False]) + def test_loc_bool_should_not_raise(self, frame_or_series, bool_value): + obj = frame_or_series( + index=Index([True, False], dtype="boolean"), dtype="object" + ) + obj.loc[bool_value] + + def test_loc_bool_slice_raises(self, index, frame_or_series): + # GH20432 + message = ( + r"slice\(True, False, None\): boolean values can not be used in a slice" + ) + obj = frame_or_series(index=index, dtype="object") + with pytest.raises(TypeError, match=message): + obj.loc[True:False] + + +class TestLocBooleanMask: + def test_loc_setitem_bool_mask_timedeltaindex(self): + # GH#14946 + df = DataFrame({"x": range(10)}) + df.index = to_timedelta(range(10), unit="s") + conditions = [df["x"] > 3, df["x"] == 3, df["x"] < 3] + expected_data = [ + [0, 1, 2, 3, 10, 10, 10, 10, 10, 10], + [0, 1, 2, 10, 4, 5, 6, 7, 8, 9], + [10, 10, 10, 3, 4, 5, 6, 7, 8, 9], + ] + for cond, data in zip(conditions, expected_data): + result = df.copy() + result.loc[cond, "x"] = 10 + + expected = DataFrame( + data, + index=to_timedelta(range(10), unit="s"), + columns=["x"], + dtype="int64", + ) + tm.assert_frame_equal(expected, result) + + @pytest.mark.parametrize("tz", [None, "UTC"]) + def test_loc_setitem_mask_with_datetimeindex_tz(self, tz): + # GH#16889 + # support .loc with alignment and tz-aware DatetimeIndex + mask = np.array([True, False, True, False]) + + idx = date_range("20010101", periods=4, tz=tz) + df = DataFrame({"a": np.arange(4)}, index=idx).astype("float64") + + result = df.copy() + result.loc[mask, :] = df.loc[mask, :] + tm.assert_frame_equal(result, df) + + result = df.copy() + result.loc[mask] = df.loc[mask] + tm.assert_frame_equal(result, df) + + def test_loc_setitem_mask_and_label_with_datetimeindex(self): + # GH#9478 + # a datetimeindex alignment issue with partial setting + df = DataFrame( + np.arange(6.0).reshape(3, 2), + columns=list("AB"), + index=date_range("1/1/2000", periods=3, freq="1h"), + ) + expected = df.copy() + expected["C"] = [expected.index[0]] + [pd.NaT, pd.NaT] + + mask = df.A < 1 + df.loc[mask, "C"] = df.loc[mask].index + tm.assert_frame_equal(df, expected) + + def test_loc_setitem_mask_td64_series_value(self): + # GH#23462 key list of bools, value is a Series + td1 = Timedelta(0) + td2 = Timedelta(28767471428571405) + df = DataFrame({"col": Series([td1, td2])}) + df_copy = df.copy() + ser = Series([td1]) + + expected = df["col"].iloc[1]._value + df.loc[[True, False]] = ser + result = df["col"].iloc[1]._value + + assert expected == result + tm.assert_frame_equal(df, df_copy) + + @td.skip_array_manager_invalid_test # TODO(ArrayManager) rewrite not using .values + def test_loc_setitem_boolean_and_column(self, float_frame): + expected = float_frame.copy() + mask = float_frame["A"] > 0 + + float_frame.loc[mask, "B"] = 0 + + values = expected.values.copy() + values[mask.values, 1] = 0 + expected = DataFrame(values, index=expected.index, columns=expected.columns) + tm.assert_frame_equal(float_frame, expected) + + def test_loc_setitem_ndframe_values_alignment( + self, using_copy_on_write, warn_copy_on_write + ): + # GH#45501 + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + df.loc[[False, False, True], ["a"]] = DataFrame( + {"a": [10, 20, 30]}, index=[2, 1, 0] + ) + + expected = DataFrame({"a": [1, 2, 10], "b": [4, 5, 6]}) + tm.assert_frame_equal(df, expected) + + # same thing with Series RHS + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + df.loc[[False, False, True], ["a"]] = Series([10, 11, 12], index=[2, 1, 0]) + tm.assert_frame_equal(df, expected) + + # same thing but setting "a" instead of ["a"] + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + df.loc[[False, False, True], "a"] = Series([10, 11, 12], index=[2, 1, 0]) + tm.assert_frame_equal(df, expected) + + df = DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]}) + df_orig = df.copy() + ser = df["a"] + with tm.assert_cow_warning(warn_copy_on_write): + ser.loc[[False, False, True]] = Series([10, 11, 12], index=[2, 1, 0]) + if using_copy_on_write: + tm.assert_frame_equal(df, df_orig) + else: + tm.assert_frame_equal(df, expected) + + def test_loc_indexer_empty_broadcast(self): + # GH#51450 + df = DataFrame({"a": [], "b": []}, dtype=object) + expected = df.copy() + df.loc[np.array([], dtype=np.bool_), ["a"]] = df["a"].copy() + tm.assert_frame_equal(df, expected) + + def test_loc_indexer_all_false_broadcast(self): + # GH#51450 + df = DataFrame({"a": ["x"], "b": ["y"]}, dtype=object) + expected = df.copy() + df.loc[np.array([False], dtype=np.bool_), ["a"]] = df["b"].copy() + tm.assert_frame_equal(df, expected) + + def test_loc_indexer_length_one(self): + # GH#51435 + df = DataFrame({"a": ["x"], "b": ["y"]}, dtype=object) + expected = DataFrame({"a": ["y"], "b": ["y"]}, dtype=object) + df.loc[np.array([True], dtype=np.bool_), ["a"]] = df["b"].copy() + tm.assert_frame_equal(df, expected) + + +class TestLocListlike: + @pytest.mark.parametrize("box", [lambda x: x, np.asarray, list]) + def test_loc_getitem_list_of_labels_categoricalindex_with_na(self, box): + # passing a list can include valid categories _or_ NA values + ci = CategoricalIndex(["A", "B", np.nan]) + ser = Series(range(3), index=ci) + + result = ser.loc[box(ci)] + tm.assert_series_equal(result, ser) + + result = ser[box(ci)] + tm.assert_series_equal(result, ser) + + result = ser.to_frame().loc[box(ci)] + tm.assert_frame_equal(result, ser.to_frame()) + + ser2 = ser[:-1] + ci2 = ci[1:] + # but if there are no NAs present, this should raise KeyError + msg = "not in index" + with pytest.raises(KeyError, match=msg): + ser2.loc[box(ci2)] + + with pytest.raises(KeyError, match=msg): + ser2[box(ci2)] + + with pytest.raises(KeyError, match=msg): + ser2.to_frame().loc[box(ci2)] + + def test_loc_getitem_series_label_list_missing_values(self): + # gh-11428 + key = np.array( + ["2001-01-04", "2001-01-02", "2001-01-04", "2001-01-14"], dtype="datetime64" + ) + ser = Series([2, 5, 8, 11], date_range("2001-01-01", freq="D", periods=4)) + with pytest.raises(KeyError, match="not in index"): + ser.loc[key] + + def test_loc_getitem_series_label_list_missing_integer_values(self): + # GH: 25927 + ser = Series( + index=np.array([9730701000001104, 10049011000001109]), + data=np.array([999000011000001104, 999000011000001104]), + ) + with pytest.raises(KeyError, match="not in index"): + ser.loc[np.array([9730701000001104, 10047311000001102])] + + @pytest.mark.parametrize("to_period", [True, False]) + def test_loc_getitem_listlike_of_datetimelike_keys(self, to_period): + # GH#11497 + + idx = date_range("2011-01-01", "2011-01-02", freq="D", name="idx") + if to_period: + idx = idx.to_period("D") + ser = Series([0.1, 0.2], index=idx, name="s") + + keys = [Timestamp("2011-01-01"), Timestamp("2011-01-02")] + if to_period: + keys = [x.to_period("D") for x in keys] + result = ser.loc[keys] + exp = Series([0.1, 0.2], index=idx, name="s") + if not to_period: + exp.index = exp.index._with_freq(None) + tm.assert_series_equal(result, exp, check_index_type=True) + + keys = [ + Timestamp("2011-01-02"), + Timestamp("2011-01-02"), + Timestamp("2011-01-01"), + ] + if to_period: + keys = [x.to_period("D") for x in keys] + exp = Series( + [0.2, 0.2, 0.1], index=Index(keys, name="idx", dtype=idx.dtype), name="s" + ) + result = ser.loc[keys] + tm.assert_series_equal(result, exp, check_index_type=True) + + keys = [ + Timestamp("2011-01-03"), + Timestamp("2011-01-02"), + Timestamp("2011-01-03"), + ] + if to_period: + keys = [x.to_period("D") for x in keys] + + with pytest.raises(KeyError, match="not in index"): + ser.loc[keys] + + def test_loc_named_index(self): + # GH 42790 + df = DataFrame( + [[1, 2], [4, 5], [7, 8]], + index=["cobra", "viper", "sidewinder"], + columns=["max_speed", "shield"], + ) + expected = df.iloc[:2] + expected.index.name = "foo" + result = df.loc[Index(["cobra", "viper"], name="foo")] + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "columns, column_key, expected_columns", + [ + ([2011, 2012, 2013], [2011, 2012], [0, 1]), + ([2011, 2012, "All"], [2011, 2012], [0, 1]), + ([2011, 2012, "All"], [2011, "All"], [0, 2]), + ], +) +def test_loc_getitem_label_list_integer_labels(columns, column_key, expected_columns): + # gh-14836 + df = DataFrame( + np.random.default_rng(2).random((3, 3)), columns=columns, index=list("ABC") + ) + expected = df.iloc[:, expected_columns] + result = df.loc[["A", "B", "C"], column_key] + + tm.assert_frame_equal(result, expected, check_column_type=True) + + +def test_loc_setitem_float_intindex(): + # GH 8720 + rand_data = np.random.default_rng(2).standard_normal((8, 4)) + result = DataFrame(rand_data) + result.loc[:, 0.5] = np.nan + expected_data = np.hstack((rand_data, np.array([np.nan] * 8).reshape(8, 1))) + expected = DataFrame(expected_data, columns=[0.0, 1.0, 2.0, 3.0, 0.5]) + tm.assert_frame_equal(result, expected) + + result = DataFrame(rand_data) + result.loc[:, 0.5] = np.nan + tm.assert_frame_equal(result, expected) + + +def test_loc_axis_1_slice(): + # GH 10586 + cols = [(yr, m) for yr in [2014, 2015] for m in [7, 8, 9, 10]] + df = DataFrame( + np.ones((10, 8)), + index=tuple("ABCDEFGHIJ"), + columns=MultiIndex.from_tuples(cols), + ) + result = df.loc(axis=1)[(2014, 9):(2015, 8)] + expected = DataFrame( + np.ones((10, 4)), + index=tuple("ABCDEFGHIJ"), + columns=MultiIndex.from_tuples([(2014, 9), (2014, 10), (2015, 7), (2015, 8)]), + ) + tm.assert_frame_equal(result, expected) + + +def test_loc_set_dataframe_multiindex(): + # GH 14592 + expected = DataFrame( + "a", index=range(2), columns=MultiIndex.from_product([range(2), range(2)]) + ) + result = expected.copy() + result.loc[0, [(0, 1)]] = result.loc[0, [(0, 1)]] + tm.assert_frame_equal(result, expected) + + +def test_loc_mixed_int_float(): + # GH#19456 + ser = Series(range(2), Index([1, 2.0], dtype=object)) + + result = ser.loc[1] + assert result == 0 + + +def test_loc_with_positional_slice_raises(): + # GH#31840 + ser = Series(range(4), index=["A", "B", "C", "D"]) + + with pytest.raises(TypeError, match="Slicing a positional slice with .loc"): + ser.loc[:3] = 2 + + +def test_loc_slice_disallows_positional(): + # GH#16121, GH#24612, GH#31810 + dti = date_range("2016-01-01", periods=3) + df = DataFrame(np.random.default_rng(2).random((3, 2)), index=dti) + + ser = df[0] + + msg = ( + "cannot do slice indexing on DatetimeIndex with these " + r"indexers \[1\] of type int" + ) + + for obj in [df, ser]: + with pytest.raises(TypeError, match=msg): + obj.loc[1:3] + + with pytest.raises(TypeError, match="Slicing a positional slice with .loc"): + # GH#31840 enforce incorrect behavior + obj.loc[1:3] = 1 + + with pytest.raises(TypeError, match=msg): + df.loc[1:3, 1] + + with pytest.raises(TypeError, match="Slicing a positional slice with .loc"): + # GH#31840 enforce incorrect behavior + df.loc[1:3, 1] = 2 + + +def test_loc_datetimelike_mismatched_dtypes(): + # GH#32650 dont mix and match datetime/timedelta/period dtypes + + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 3)), + columns=["a", "b", "c"], + index=date_range("2012", freq="h", periods=5), + ) + # create dataframe with non-unique DatetimeIndex + df = df.iloc[[0, 2, 2, 3]].copy() + + dti = df.index + tdi = pd.TimedeltaIndex(dti.asi8) # matching i8 values + + msg = r"None of \[TimedeltaIndex.* are in the \[index\]" + with pytest.raises(KeyError, match=msg): + df.loc[tdi] + + with pytest.raises(KeyError, match=msg): + df["a"].loc[tdi] + + +def test_loc_with_period_index_indexer(): + # GH#4125 + idx = pd.period_range("2002-01", "2003-12", freq="M") + df = DataFrame(np.random.default_rng(2).standard_normal((24, 10)), index=idx) + tm.assert_frame_equal(df, df.loc[idx]) + tm.assert_frame_equal(df, df.loc[list(idx)]) + tm.assert_frame_equal(df, df.loc[list(idx)]) + tm.assert_frame_equal(df.iloc[0:5], df.loc[idx[0:5]]) + tm.assert_frame_equal(df, df.loc[list(idx)]) + + +def test_loc_setitem_multiindex_timestamp(): + # GH#13831 + vals = np.random.default_rng(2).standard_normal((8, 6)) + idx = date_range("1/1/2000", periods=8) + cols = ["A", "B", "C", "D", "E", "F"] + exp = DataFrame(vals, index=idx, columns=cols) + exp.loc[exp.index[1], ("A", "B")] = np.nan + vals[1][0:2] = np.nan + res = DataFrame(vals, index=idx, columns=cols) + tm.assert_frame_equal(res, exp) + + +def test_loc_getitem_multiindex_tuple_level(): + # GH#27591 + lev1 = ["a", "b", "c"] + lev2 = [(0, 1), (1, 0)] + lev3 = [0, 1] + cols = MultiIndex.from_product([lev1, lev2, lev3], names=["x", "y", "z"]) + df = DataFrame(6, index=range(5), columns=cols) + + # the lev2[0] here should be treated as a single label, not as a sequence + # of labels + result = df.loc[:, (lev1[0], lev2[0], lev3[0])] + + # TODO: i think this actually should drop levels + expected = df.iloc[:, :1] + tm.assert_frame_equal(result, expected) + + alt = df.xs((lev1[0], lev2[0], lev3[0]), level=[0, 1, 2], axis=1) + tm.assert_frame_equal(alt, expected) + + # same thing on a Series + ser = df.iloc[0] + expected2 = ser.iloc[:1] + + alt2 = ser.xs((lev1[0], lev2[0], lev3[0]), level=[0, 1, 2], axis=0) + tm.assert_series_equal(alt2, expected2) + + result2 = ser.loc[lev1[0], lev2[0], lev3[0]] + assert result2 == 6 + + +def test_loc_getitem_nullable_index_with_duplicates(): + # GH#34497 + df = DataFrame( + data=np.array([[1, 2, 3, 4], [5, 6, 7, 8], [1, 2, np.nan, np.nan]]).T, + columns=["a", "b", "c"], + dtype="Int64", + ) + df2 = df.set_index("c") + assert df2.index.dtype == "Int64" + + res = df2.loc[1] + expected = Series([1, 5], index=df2.columns, dtype="Int64", name=1) + tm.assert_series_equal(res, expected) + + # pd.NA and duplicates in an object-dtype Index + df2.index = df2.index.astype(object) + res = df2.loc[1] + tm.assert_series_equal(res, expected) + + +@pytest.mark.parametrize("value", [300, np.uint16(300), np.int16(300)]) +def test_loc_setitem_uint8_upcast(value): + # GH#26049 + + df = DataFrame([1, 2, 3, 4], columns=["col1"], dtype="uint8") + with tm.assert_produces_warning(FutureWarning, match="item of incompatible dtype"): + df.loc[2, "col1"] = value # value that can't be held in uint8 + + if np_version_gt2 and isinstance(value, np.int16): + # Note, result type of uint8 + int16 is int16 + # in numpy < 2, though, numpy would inspect the + # value and see that it could fit in an uint16, resulting in a uint16 + dtype = "int16" + else: + dtype = "uint16" + + expected = DataFrame([1, 2, 300, 4], columns=["col1"], dtype=dtype) + tm.assert_frame_equal(df, expected) + + +@pytest.mark.parametrize( + "fill_val,exp_dtype", + [ + (Timestamp("2022-01-06"), "datetime64[ns]"), + (Timestamp("2022-01-07", tz="US/Eastern"), "datetime64[ns, US/Eastern]"), + ], +) +def test_loc_setitem_using_datetimelike_str_as_index(fill_val, exp_dtype): + data = ["2022-01-02", "2022-01-03", "2022-01-04", fill_val.date()] + index = DatetimeIndex(data, tz=fill_val.tz, dtype=exp_dtype) + df = DataFrame([10, 11, 12, 14], columns=["a"], index=index) + # adding new row using an unexisting datetime-like str index + df.loc["2022-01-08", "a"] = 13 + + data.append("2022-01-08") + expected_index = DatetimeIndex(data, dtype=exp_dtype) + tm.assert_index_equal(df.index, expected_index, exact=True) + + +def test_loc_set_int_dtype(): + # GH#23326 + df = DataFrame([list("abc")]) + df.loc[:, "col1"] = 5 + + expected = DataFrame({0: ["a"], 1: ["b"], 2: ["c"], "col1": [5]}) + tm.assert_frame_equal(df, expected) + + +@pytest.mark.filterwarnings(r"ignore:Period with BDay freq is deprecated:FutureWarning") +@pytest.mark.filterwarnings(r"ignore:PeriodDtype\[B\] is deprecated:FutureWarning") +def test_loc_periodindex_3_levels(): + # GH#24091 + p_index = PeriodIndex( + ["20181101 1100", "20181101 1200", "20181102 1300", "20181102 1400"], + name="datetime", + freq="B", + ) + mi_series = DataFrame( + [["A", "B", 1.0], ["A", "C", 2.0], ["Z", "Q", 3.0], ["W", "F", 4.0]], + index=p_index, + columns=["ONE", "TWO", "VALUES"], + ) + mi_series = mi_series.set_index(["ONE", "TWO"], append=True)["VALUES"] + assert mi_series.loc[(p_index[0], "A", "B")] == 1.0 + + +def test_loc_setitem_pyarrow_strings(): + # GH#52319 + pytest.importorskip("pyarrow") + df = DataFrame( + { + "strings": Series(["A", "B", "C"], dtype="string[pyarrow]"), + "ids": Series([True, True, False]), + } + ) + new_value = Series(["X", "Y"]) + df.loc[df.ids, "strings"] = new_value + + expected_df = DataFrame( + { + "strings": Series(["X", "Y", "C"], dtype="string[pyarrow]"), + "ids": Series([True, True, False]), + } + ) + + tm.assert_frame_equal(df, expected_df) + + +class TestLocSeries: + @pytest.mark.parametrize("val,expected", [(2**63 - 1, 3), (2**63, 4)]) + def test_loc_uint64(self, val, expected): + # see GH#19399 + ser = Series({2**63 - 1: 3, 2**63: 4}) + assert ser.loc[val] == expected + + def test_loc_getitem(self, string_series, datetime_series): + inds = string_series.index[[3, 4, 7]] + tm.assert_series_equal(string_series.loc[inds], string_series.reindex(inds)) + tm.assert_series_equal(string_series.iloc[5::2], string_series[5::2]) + + # slice with indices + d1, d2 = datetime_series.index[[5, 15]] + result = datetime_series.loc[d1:d2] + expected = datetime_series.truncate(d1, d2) + tm.assert_series_equal(result, expected) + + # boolean + mask = string_series > string_series.median() + tm.assert_series_equal(string_series.loc[mask], string_series[mask]) + + # ask for index value + assert datetime_series.loc[d1] == datetime_series[d1] + assert datetime_series.loc[d2] == datetime_series[d2] + + def test_loc_getitem_not_monotonic(self, datetime_series): + d1, d2 = datetime_series.index[[5, 15]] + + ts2 = datetime_series[::2].iloc[[1, 2, 0]] + + msg = r"Timestamp\('2000-01-10 00:00:00'\)" + with pytest.raises(KeyError, match=msg): + ts2.loc[d1:d2] + with pytest.raises(KeyError, match=msg): + ts2.loc[d1:d2] = 0 + + def test_loc_getitem_setitem_integer_slice_keyerrors(self): + ser = Series( + np.random.default_rng(2).standard_normal(10), index=list(range(0, 20, 2)) + ) + + # this is OK + cp = ser.copy() + cp.iloc[4:10] = 0 + assert (cp.iloc[4:10] == 0).all() + + # so is this + cp = ser.copy() + cp.iloc[3:11] = 0 + assert (cp.iloc[3:11] == 0).values.all() + + result = ser.iloc[2:6] + result2 = ser.loc[3:11] + expected = ser.reindex([4, 6, 8, 10]) + + tm.assert_series_equal(result, expected) + tm.assert_series_equal(result2, expected) + + # non-monotonic, raise KeyError + s2 = ser.iloc[list(range(5)) + list(range(9, 4, -1))] + with pytest.raises(KeyError, match=r"^3$"): + s2.loc[3:11] + with pytest.raises(KeyError, match=r"^3$"): + s2.loc[3:11] = 0 + + def test_loc_getitem_iterator(self, string_series): + idx = iter(string_series.index[:10]) + result = string_series.loc[idx] + tm.assert_series_equal(result, string_series[:10]) + + def test_loc_setitem_boolean(self, string_series): + mask = string_series > string_series.median() + + result = string_series.copy() + result.loc[mask] = 0 + expected = string_series + expected[mask] = 0 + tm.assert_series_equal(result, expected) + + def test_loc_setitem_corner(self, string_series): + inds = list(string_series.index[[5, 8, 12]]) + string_series.loc[inds] = 5 + msg = r"\['foo'\] not in index" + with pytest.raises(KeyError, match=msg): + string_series.loc[inds + ["foo"]] = 5 + + def test_basic_setitem_with_labels(self, datetime_series): + indices = datetime_series.index[[5, 10, 15]] + + cp = datetime_series.copy() + exp = datetime_series.copy() + cp[indices] = 0 + exp.loc[indices] = 0 + tm.assert_series_equal(cp, exp) + + cp = datetime_series.copy() + exp = datetime_series.copy() + cp[indices[0] : indices[2]] = 0 + exp.loc[indices[0] : indices[2]] = 0 + tm.assert_series_equal(cp, exp) + + def test_loc_setitem_listlike_of_ints(self): + # integer indexes, be careful + ser = Series( + np.random.default_rng(2).standard_normal(10), index=list(range(0, 20, 2)) + ) + inds = [0, 4, 6] + arr_inds = np.array([0, 4, 6]) + + cp = ser.copy() + exp = ser.copy() + ser[inds] = 0 + ser.loc[inds] = 0 + tm.assert_series_equal(cp, exp) + + cp = ser.copy() + exp = ser.copy() + ser[arr_inds] = 0 + ser.loc[arr_inds] = 0 + tm.assert_series_equal(cp, exp) + + inds_notfound = [0, 4, 5, 6] + arr_inds_notfound = np.array([0, 4, 5, 6]) + msg = r"\[5\] not in index" + with pytest.raises(KeyError, match=msg): + ser[inds_notfound] = 0 + with pytest.raises(Exception, match=msg): + ser[arr_inds_notfound] = 0 + + def test_loc_setitem_dt64tz_values(self): + # GH#12089 + ser = Series( + date_range("2011-01-01", periods=3, tz="US/Eastern"), + index=["a", "b", "c"], + ) + s2 = ser.copy() + expected = Timestamp("2011-01-03", tz="US/Eastern") + s2.loc["a"] = expected + result = s2.loc["a"] + assert result == expected + + s2 = ser.copy() + s2.iloc[0] = expected + result = s2.iloc[0] + assert result == expected + + s2 = ser.copy() + s2["a"] = expected + result = s2["a"] + assert result == expected + + @pytest.mark.parametrize("array_fn", [np.array, pd.array, list, tuple]) + @pytest.mark.parametrize("size", [0, 4, 5, 6]) + def test_loc_iloc_setitem_with_listlike(self, size, array_fn): + # GH37748 + # testing insertion, in a Series of size N (here 5), of a listlike object + # of size 0, N-1, N, N+1 + + arr = array_fn([0] * size) + expected = Series([arr, 0, 0, 0, 0], index=list("abcde"), dtype=object) + + ser = Series(0, index=list("abcde"), dtype=object) + ser.loc["a"] = arr + tm.assert_series_equal(ser, expected) + + ser = Series(0, index=list("abcde"), dtype=object) + ser.iloc[0] = arr + tm.assert_series_equal(ser, expected) + + @pytest.mark.parametrize("indexer", [IndexSlice["A", :], ("A", slice(None))]) + def test_loc_series_getitem_too_many_dimensions(self, indexer): + # GH#35349 + ser = Series( + index=MultiIndex.from_tuples([("A", "0"), ("A", "1"), ("B", "0")]), + data=[21, 22, 23], + ) + msg = "Too many indexers" + with pytest.raises(IndexingError, match=msg): + ser.loc[indexer, :] + + with pytest.raises(IndexingError, match=msg): + ser.loc[indexer, :] = 1 + + def test_loc_setitem(self, string_series): + inds = string_series.index[[3, 4, 7]] + + result = string_series.copy() + result.loc[inds] = 5 + + expected = string_series.copy() + expected.iloc[[3, 4, 7]] = 5 + tm.assert_series_equal(result, expected) + + result.iloc[5:10] = 10 + expected[5:10] = 10 + tm.assert_series_equal(result, expected) + + # set slice with indices + d1, d2 = string_series.index[[5, 15]] + result.loc[d1:d2] = 6 + expected[5:16] = 6 # because it's inclusive + tm.assert_series_equal(result, expected) + + # set index value + string_series.loc[d1] = 4 + string_series.loc[d2] = 6 + assert string_series[d1] == 4 + assert string_series[d2] == 6 + + @pytest.mark.parametrize("dtype", ["object", "string"]) + def test_loc_assign_dict_to_row(self, dtype): + # GH41044 + df = DataFrame({"A": ["abc", "def"], "B": ["ghi", "jkl"]}, dtype=dtype) + df.loc[0, :] = {"A": "newA", "B": "newB"} + + expected = DataFrame({"A": ["newA", "def"], "B": ["newB", "jkl"]}, dtype=dtype) + + tm.assert_frame_equal(df, expected) + + @td.skip_array_manager_invalid_test + def test_loc_setitem_dict_timedelta_multiple_set(self): + # GH 16309 + result = DataFrame(columns=["time", "value"]) + result.loc[1] = {"time": Timedelta(6, unit="s"), "value": "foo"} + result.loc[1] = {"time": Timedelta(6, unit="s"), "value": "foo"} + expected = DataFrame( + [[Timedelta(6, unit="s"), "foo"]], columns=["time", "value"], index=[1] + ) + tm.assert_frame_equal(result, expected) + + def test_loc_set_multiple_items_in_multiple_new_columns(self): + # GH 25594 + df = DataFrame(index=[1, 2], columns=["a"]) + df.loc[1, ["b", "c"]] = [6, 7] + + expected = DataFrame( + { + "a": Series([np.nan, np.nan], dtype="object"), + "b": [6, np.nan], + "c": [7, np.nan], + }, + index=[1, 2], + ) + + tm.assert_frame_equal(df, expected) + + def test_getitem_loc_str_periodindex(self): + # GH#33964 + msg = "Period with BDay freq is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + index = pd.period_range(start="2000", periods=20, freq="B") + series = Series(range(20), index=index) + assert series.loc["2000-01-14"] == 9 + + def test_loc_nonunique_masked_index(self): + # GH 57027 + ids = list(range(11)) + index = Index(ids * 1000, dtype="Int64") + df = DataFrame({"val": np.arange(len(index), dtype=np.intp)}, index=index) + result = df.loc[ids] + expected = DataFrame( + {"val": index.argsort(kind="stable").astype(np.intp)}, + index=Index(np.array(ids).repeat(1000), dtype="Int64"), + ) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_na_indexing.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_na_indexing.py new file mode 100644 index 0000000000000000000000000000000000000000..5364cfe85243001040bf40c8b72b4f71808c3d9c --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_na_indexing.py @@ -0,0 +1,75 @@ +import pytest + +import pandas as pd +import pandas._testing as tm + + +@pytest.mark.parametrize( + "values, dtype", + [ + ([], "object"), + ([1, 2, 3], "int64"), + ([1.0, 2.0, 3.0], "float64"), + (["a", "b", "c"], "object"), + (["a", "b", "c"], "string"), + ([1, 2, 3], "datetime64[ns]"), + ([1, 2, 3], "datetime64[ns, CET]"), + ([1, 2, 3], "timedelta64[ns]"), + (["2000", "2001", "2002"], "Period[D]"), + ([1, 0, 3], "Sparse"), + ([pd.Interval(0, 1), pd.Interval(1, 2), pd.Interval(3, 4)], "interval"), + ], +) +@pytest.mark.parametrize( + "mask", [[True, False, False], [True, True, True], [False, False, False]] +) +@pytest.mark.parametrize("indexer_class", [list, pd.array, pd.Index, pd.Series]) +@pytest.mark.parametrize("frame", [True, False]) +def test_series_mask_boolean(values, dtype, mask, indexer_class, frame): + # In case len(values) < 3 + index = ["a", "b", "c"][: len(values)] + mask = mask[: len(values)] + + obj = pd.Series(values, dtype=dtype, index=index) + if frame: + if len(values) == 0: + # Otherwise obj is an empty DataFrame with shape (0, 1) + obj = pd.DataFrame(dtype=dtype, index=index) + else: + obj = obj.to_frame() + + if indexer_class is pd.array: + mask = pd.array(mask, dtype="boolean") + elif indexer_class is pd.Series: + mask = pd.Series(mask, index=obj.index, dtype="boolean") + else: + mask = indexer_class(mask) + + expected = obj[mask] + + result = obj[mask] + tm.assert_equal(result, expected) + + if indexer_class is pd.Series: + msg = "iLocation based boolean indexing cannot use an indexable as a mask" + with pytest.raises(ValueError, match=msg): + result = obj.iloc[mask] + tm.assert_equal(result, expected) + else: + result = obj.iloc[mask] + tm.assert_equal(result, expected) + + result = obj.loc[mask] + tm.assert_equal(result, expected) + + +def test_na_treated_as_false(frame_or_series, indexer_sli): + # https://github.com/pandas-dev/pandas/issues/31503 + obj = frame_or_series([1, 2, 3]) + + mask = pd.array([True, False, None], dtype="boolean") + + result = indexer_sli(obj)[mask] + expected = indexer_sli(obj)[mask.fillna(False)] + + tm.assert_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_partial.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_partial.py new file mode 100644 index 0000000000000000000000000000000000000000..e3246fd3c2a59da586f294480580e9f21d0a2705 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_partial.py @@ -0,0 +1,696 @@ +""" +test setting *parts* of objects both positionally and label based + +TODO: these should be split among the indexer tests +""" + +import numpy as np +import pytest + +import pandas as pd +from pandas import ( + DataFrame, + Index, + Period, + Series, + Timestamp, + date_range, + period_range, +) +import pandas._testing as tm + + +class TestEmptyFrameSetitemExpansion: + def test_empty_frame_setitem_index_name_retained(self): + # GH#31368 empty frame has non-None index.name -> retained + df = DataFrame({}, index=pd.RangeIndex(0, name="df_index")) + series = Series(1.23, index=pd.RangeIndex(4, name="series_index")) + + df["series"] = series + expected = DataFrame( + {"series": [1.23] * 4}, + index=pd.RangeIndex(4, name="df_index"), + columns=Index(["series"]), + ) + + tm.assert_frame_equal(df, expected) + + def test_empty_frame_setitem_index_name_inherited(self): + # GH#36527 empty frame has None index.name -> not retained + df = DataFrame() + series = Series(1.23, index=pd.RangeIndex(4, name="series_index")) + df["series"] = series + expected = DataFrame( + {"series": [1.23] * 4}, + index=pd.RangeIndex(4, name="series_index"), + columns=Index(["series"]), + ) + tm.assert_frame_equal(df, expected) + + def test_loc_setitem_zerolen_series_columns_align(self): + # columns will align + df = DataFrame(columns=["A", "B"]) + df.loc[0] = Series(1, index=range(4)) + expected = DataFrame(columns=["A", "B"], index=[0], dtype=np.float64) + tm.assert_frame_equal(df, expected) + + # columns will align + df = DataFrame(columns=["A", "B"]) + df.loc[0] = Series(1, index=["B"]) + + exp = DataFrame([[np.nan, 1]], columns=["A", "B"], index=[0], dtype="float64") + tm.assert_frame_equal(df, exp) + + def test_loc_setitem_zerolen_list_length_must_match_columns(self): + # list-like must conform + df = DataFrame(columns=["A", "B"]) + + msg = "cannot set a row with mismatched columns" + with pytest.raises(ValueError, match=msg): + df.loc[0] = [1, 2, 3] + + df = DataFrame(columns=["A", "B"]) + df.loc[3] = [6, 7] # length matches len(df.columns) --> OK! + + exp = DataFrame([[6, 7]], index=[3], columns=["A", "B"], dtype=np.int64) + tm.assert_frame_equal(df, exp) + + def test_partial_set_empty_frame(self): + # partially set with an empty object + # frame + df = DataFrame() + + msg = "cannot set a frame with no defined columns" + + with pytest.raises(ValueError, match=msg): + df.loc[1] = 1 + + with pytest.raises(ValueError, match=msg): + df.loc[1] = Series([1], index=["foo"]) + + msg = "cannot set a frame with no defined index and a scalar" + with pytest.raises(ValueError, match=msg): + df.loc[:, 1] = 1 + + def test_partial_set_empty_frame2(self): + # these work as they don't really change + # anything but the index + # GH#5632 + expected = DataFrame(columns=Index(["foo"]), index=Index([], dtype="object")) + + df = DataFrame(index=Index([], dtype="object")) + df["foo"] = Series([], dtype="object") + + tm.assert_frame_equal(df, expected) + + df = DataFrame(index=Index([])) + df["foo"] = Series(df.index) + + tm.assert_frame_equal(df, expected) + + df = DataFrame(index=Index([])) + df["foo"] = df.index + + tm.assert_frame_equal(df, expected) + + def test_partial_set_empty_frame3(self): + expected = DataFrame(columns=Index(["foo"]), index=Index([], dtype="int64")) + expected["foo"] = expected["foo"].astype("float64") + + df = DataFrame(index=Index([], dtype="int64")) + df["foo"] = [] + + tm.assert_frame_equal(df, expected) + + df = DataFrame(index=Index([], dtype="int64")) + df["foo"] = Series(np.arange(len(df)), dtype="float64") + + tm.assert_frame_equal(df, expected) + + def test_partial_set_empty_frame4(self): + df = DataFrame(index=Index([], dtype="int64")) + df["foo"] = range(len(df)) + + expected = DataFrame(columns=Index(["foo"]), index=Index([], dtype="int64")) + # range is int-dtype-like, so we get int64 dtype + expected["foo"] = expected["foo"].astype("int64") + tm.assert_frame_equal(df, expected) + + def test_partial_set_empty_frame5(self): + df = DataFrame() + tm.assert_index_equal(df.columns, pd.RangeIndex(0)) + df2 = DataFrame() + df2[1] = Series([1], index=["foo"]) + df.loc[:, 1] = Series([1], index=["foo"]) + tm.assert_frame_equal(df, DataFrame([[1]], index=["foo"], columns=[1])) + tm.assert_frame_equal(df, df2) + + def test_partial_set_empty_frame_no_index(self): + # no index to start + expected = DataFrame({0: Series(1, index=range(4))}, columns=["A", "B", 0]) + + df = DataFrame(columns=["A", "B"]) + df[0] = Series(1, index=range(4)) + tm.assert_frame_equal(df, expected) + + df = DataFrame(columns=["A", "B"]) + df.loc[:, 0] = Series(1, index=range(4)) + tm.assert_frame_equal(df, expected) + + def test_partial_set_empty_frame_row(self): + # GH#5720, GH#5744 + # don't create rows when empty + expected = DataFrame(columns=["A", "B", "New"], index=Index([], dtype="int64")) + expected["A"] = expected["A"].astype("int64") + expected["B"] = expected["B"].astype("float64") + expected["New"] = expected["New"].astype("float64") + + df = DataFrame({"A": [1, 2, 3], "B": [1.2, 4.2, 5.2]}) + y = df[df.A > 5] + y["New"] = np.nan + tm.assert_frame_equal(y, expected) + + expected = DataFrame(columns=["a", "b", "c c", "d"]) + expected["d"] = expected["d"].astype("int64") + df = DataFrame(columns=["a", "b", "c c"]) + df["d"] = 3 + tm.assert_frame_equal(df, expected) + tm.assert_series_equal(df["c c"], Series(name="c c", dtype=object)) + + # reindex columns is ok + df = DataFrame({"A": [1, 2, 3], "B": [1.2, 4.2, 5.2]}) + y = df[df.A > 5] + result = y.reindex(columns=["A", "B", "C"]) + expected = DataFrame(columns=["A", "B", "C"]) + expected["A"] = expected["A"].astype("int64") + expected["B"] = expected["B"].astype("float64") + expected["C"] = expected["C"].astype("float64") + tm.assert_frame_equal(result, expected) + + def test_partial_set_empty_frame_set_series(self): + # GH#5756 + # setting with empty Series + df = DataFrame(Series(dtype=object)) + expected = DataFrame({0: Series(dtype=object)}) + tm.assert_frame_equal(df, expected) + + df = DataFrame(Series(name="foo", dtype=object)) + expected = DataFrame({"foo": Series(dtype=object)}) + tm.assert_frame_equal(df, expected) + + def test_partial_set_empty_frame_empty_copy_assignment(self): + # GH#5932 + # copy on empty with assignment fails + df = DataFrame(index=[0]) + df = df.copy() + df["a"] = 0 + expected = DataFrame(0, index=[0], columns=Index(["a"])) + tm.assert_frame_equal(df, expected) + + def test_partial_set_empty_frame_empty_consistencies(self, using_infer_string): + # GH#6171 + # consistency on empty frames + df = DataFrame(columns=["x", "y"]) + df["x"] = [1, 2] + expected = DataFrame({"x": [1, 2], "y": [np.nan, np.nan]}) + tm.assert_frame_equal(df, expected, check_dtype=False) + + df = DataFrame(columns=["x", "y"]) + df["x"] = ["1", "2"] + expected = DataFrame( + { + "x": Series( + ["1", "2"], + dtype=object if not using_infer_string else "str", + ), + "y": Series([np.nan, np.nan], dtype=object), + } + ) + tm.assert_frame_equal(df, expected) + + df = DataFrame(columns=["x", "y"]) + df.loc[0, "x"] = 1 + expected = DataFrame({"x": [1], "y": [np.nan]}) + tm.assert_frame_equal(df, expected, check_dtype=False) + + +class TestPartialSetting: + def test_partial_setting(self): + # GH2578, allow ix and friends to partially set + + # series + s_orig = Series([1, 2, 3]) + + s = s_orig.copy() + s[5] = 5 + expected = Series([1, 2, 3, 5], index=[0, 1, 2, 5]) + tm.assert_series_equal(s, expected) + + s = s_orig.copy() + s.loc[5] = 5 + expected = Series([1, 2, 3, 5], index=[0, 1, 2, 5]) + tm.assert_series_equal(s, expected) + + s = s_orig.copy() + s[5] = 5.0 + expected = Series([1, 2, 3, 5.0], index=[0, 1, 2, 5]) + tm.assert_series_equal(s, expected) + + s = s_orig.copy() + s.loc[5] = 5.0 + expected = Series([1, 2, 3, 5.0], index=[0, 1, 2, 5]) + tm.assert_series_equal(s, expected) + + # iloc/iat raise + s = s_orig.copy() + + msg = "iloc cannot enlarge its target object" + with pytest.raises(IndexError, match=msg): + s.iloc[3] = 5.0 + + msg = "index 3 is out of bounds for axis 0 with size 3" + with pytest.raises(IndexError, match=msg): + s.iat[3] = 5.0 + + @pytest.mark.filterwarnings("ignore:Setting a value on a view:FutureWarning") + def test_partial_setting_frame(self, using_array_manager): + df_orig = DataFrame( + np.arange(6).reshape(3, 2), columns=["A", "B"], dtype="int64" + ) + + # iloc/iat raise + df = df_orig.copy() + + msg = "iloc cannot enlarge its target object" + with pytest.raises(IndexError, match=msg): + df.iloc[4, 2] = 5.0 + + msg = "index 2 is out of bounds for axis 0 with size 2" + if using_array_manager: + msg = "list index out of range" + with pytest.raises(IndexError, match=msg): + df.iat[4, 2] = 5.0 + + # row setting where it exists + expected = DataFrame({"A": [0, 4, 4], "B": [1, 5, 5]}) + df = df_orig.copy() + df.iloc[1] = df.iloc[2] + tm.assert_frame_equal(df, expected) + + expected = DataFrame({"A": [0, 4, 4], "B": [1, 5, 5]}) + df = df_orig.copy() + df.loc[1] = df.loc[2] + tm.assert_frame_equal(df, expected) + + # like 2578, partial setting with dtype preservation + expected = DataFrame({"A": [0, 2, 4, 4], "B": [1, 3, 5, 5]}) + df = df_orig.copy() + df.loc[3] = df.loc[2] + tm.assert_frame_equal(df, expected) + + # single dtype frame, overwrite + expected = DataFrame({"A": [0, 2, 4], "B": [0, 2, 4]}) + df = df_orig.copy() + df.loc[:, "B"] = df.loc[:, "A"] + tm.assert_frame_equal(df, expected) + + # mixed dtype frame, overwrite + expected = DataFrame({"A": [0, 2, 4], "B": Series([0.0, 2.0, 4.0])}) + df = df_orig.copy() + df["B"] = df["B"].astype(np.float64) + # as of 2.0, df.loc[:, "B"] = ... attempts (and here succeeds) at + # setting inplace + df.loc[:, "B"] = df.loc[:, "A"] + tm.assert_frame_equal(df, expected) + + # single dtype frame, partial setting + expected = df_orig.copy() + expected["C"] = df["A"] + df = df_orig.copy() + df.loc[:, "C"] = df.loc[:, "A"] + tm.assert_frame_equal(df, expected) + + # mixed frame, partial setting + expected = df_orig.copy() + expected["C"] = df["A"] + df = df_orig.copy() + df.loc[:, "C"] = df.loc[:, "A"] + tm.assert_frame_equal(df, expected) + + def test_partial_setting2(self): + # GH 8473 + dates = date_range("1/1/2000", periods=8) + df_orig = DataFrame( + np.random.default_rng(2).standard_normal((8, 4)), + index=dates, + columns=["A", "B", "C", "D"], + ) + + expected = pd.concat( + [df_orig, DataFrame({"A": 7}, index=dates[-1:] + dates.freq)], sort=True + ) + df = df_orig.copy() + df.loc[dates[-1] + dates.freq, "A"] = 7 + tm.assert_frame_equal(df, expected) + df = df_orig.copy() + df.at[dates[-1] + dates.freq, "A"] = 7 + tm.assert_frame_equal(df, expected) + + exp_other = DataFrame({0: 7}, index=dates[-1:] + dates.freq) + expected = pd.concat([df_orig, exp_other], axis=1) + + df = df_orig.copy() + df.loc[dates[-1] + dates.freq, 0] = 7 + tm.assert_frame_equal(df, expected) + df = df_orig.copy() + df.at[dates[-1] + dates.freq, 0] = 7 + tm.assert_frame_equal(df, expected) + + def test_partial_setting_mixed_dtype(self): + # in a mixed dtype environment, try to preserve dtypes + # by appending + df = DataFrame([[True, 1], [False, 2]], columns=["female", "fitness"]) + + s = df.loc[1].copy() + s.name = 2 + expected = pd.concat([df, DataFrame(s).T.infer_objects()]) + + df.loc[2] = df.loc[1] + tm.assert_frame_equal(df, expected) + + def test_series_partial_set(self): + # partial set with new index + # Regression from GH4825 + ser = Series([0.1, 0.2], index=[1, 2]) + + # loc equiv to .reindex + expected = Series([np.nan, 0.2, np.nan], index=[3, 2, 3]) + with pytest.raises(KeyError, match=r"not in index"): + ser.loc[[3, 2, 3]] + + result = ser.reindex([3, 2, 3]) + tm.assert_series_equal(result, expected, check_index_type=True) + + expected = Series([np.nan, 0.2, np.nan, np.nan], index=[3, 2, 3, "x"]) + with pytest.raises(KeyError, match="not in index"): + ser.loc[[3, 2, 3, "x"]] + + result = ser.reindex([3, 2, 3, "x"]) + tm.assert_series_equal(result, expected, check_index_type=True) + + expected = Series([0.2, 0.2, 0.1], index=[2, 2, 1]) + result = ser.loc[[2, 2, 1]] + tm.assert_series_equal(result, expected, check_index_type=True) + + expected = Series([0.2, 0.2, np.nan, 0.1], index=[2, 2, "x", 1]) + with pytest.raises(KeyError, match="not in index"): + ser.loc[[2, 2, "x", 1]] + + result = ser.reindex([2, 2, "x", 1]) + tm.assert_series_equal(result, expected, check_index_type=True) + + # raises as nothing is in the index + msg = ( + rf"\"None of \[Index\(\[3, 3, 3\], dtype='{np.dtype(int)}'\)\] " + r"are in the \[index\]\"" + ) + with pytest.raises(KeyError, match=msg): + ser.loc[[3, 3, 3]] + + expected = Series([0.2, 0.2, np.nan], index=[2, 2, 3]) + with pytest.raises(KeyError, match="not in index"): + ser.loc[[2, 2, 3]] + + result = ser.reindex([2, 2, 3]) + tm.assert_series_equal(result, expected, check_index_type=True) + + s = Series([0.1, 0.2, 0.3], index=[1, 2, 3]) + expected = Series([0.3, np.nan, np.nan], index=[3, 4, 4]) + with pytest.raises(KeyError, match="not in index"): + s.loc[[3, 4, 4]] + + result = s.reindex([3, 4, 4]) + tm.assert_series_equal(result, expected, check_index_type=True) + + s = Series([0.1, 0.2, 0.3, 0.4], index=[1, 2, 3, 4]) + expected = Series([np.nan, 0.3, 0.3], index=[5, 3, 3]) + with pytest.raises(KeyError, match="not in index"): + s.loc[[5, 3, 3]] + + result = s.reindex([5, 3, 3]) + tm.assert_series_equal(result, expected, check_index_type=True) + + s = Series([0.1, 0.2, 0.3, 0.4], index=[1, 2, 3, 4]) + expected = Series([np.nan, 0.4, 0.4], index=[5, 4, 4]) + with pytest.raises(KeyError, match="not in index"): + s.loc[[5, 4, 4]] + + result = s.reindex([5, 4, 4]) + tm.assert_series_equal(result, expected, check_index_type=True) + + s = Series([0.1, 0.2, 0.3, 0.4], index=[4, 5, 6, 7]) + expected = Series([0.4, np.nan, np.nan], index=[7, 2, 2]) + with pytest.raises(KeyError, match="not in index"): + s.loc[[7, 2, 2]] + + result = s.reindex([7, 2, 2]) + tm.assert_series_equal(result, expected, check_index_type=True) + + s = Series([0.1, 0.2, 0.3, 0.4], index=[1, 2, 3, 4]) + expected = Series([0.4, np.nan, np.nan], index=[4, 5, 5]) + with pytest.raises(KeyError, match="not in index"): + s.loc[[4, 5, 5]] + + result = s.reindex([4, 5, 5]) + tm.assert_series_equal(result, expected, check_index_type=True) + + # iloc + expected = Series([0.2, 0.2, 0.1, 0.1], index=[2, 2, 1, 1]) + result = ser.iloc[[1, 1, 0, 0]] + tm.assert_series_equal(result, expected, check_index_type=True) + + def test_series_partial_set_with_name(self): + # GH 11497 + + idx = Index([1, 2], dtype="int64", name="idx") + ser = Series([0.1, 0.2], index=idx, name="s") + + # loc + with pytest.raises(KeyError, match=r"\[3\] not in index"): + ser.loc[[3, 2, 3]] + + with pytest.raises(KeyError, match=r"not in index"): + ser.loc[[3, 2, 3, "x"]] + + exp_idx = Index([2, 2, 1], dtype="int64", name="idx") + expected = Series([0.2, 0.2, 0.1], index=exp_idx, name="s") + result = ser.loc[[2, 2, 1]] + tm.assert_series_equal(result, expected, check_index_type=True) + + with pytest.raises(KeyError, match=r"\['x'\] not in index"): + ser.loc[[2, 2, "x", 1]] + + # raises as nothing is in the index + msg = ( + rf"\"None of \[Index\(\[3, 3, 3\], dtype='{np.dtype(int)}', " + r"name='idx'\)\] are in the \[index\]\"" + ) + with pytest.raises(KeyError, match=msg): + ser.loc[[3, 3, 3]] + + with pytest.raises(KeyError, match="not in index"): + ser.loc[[2, 2, 3]] + + idx = Index([1, 2, 3], dtype="int64", name="idx") + with pytest.raises(KeyError, match="not in index"): + Series([0.1, 0.2, 0.3], index=idx, name="s").loc[[3, 4, 4]] + + idx = Index([1, 2, 3, 4], dtype="int64", name="idx") + with pytest.raises(KeyError, match="not in index"): + Series([0.1, 0.2, 0.3, 0.4], index=idx, name="s").loc[[5, 3, 3]] + + idx = Index([1, 2, 3, 4], dtype="int64", name="idx") + with pytest.raises(KeyError, match="not in index"): + Series([0.1, 0.2, 0.3, 0.4], index=idx, name="s").loc[[5, 4, 4]] + + idx = Index([4, 5, 6, 7], dtype="int64", name="idx") + with pytest.raises(KeyError, match="not in index"): + Series([0.1, 0.2, 0.3, 0.4], index=idx, name="s").loc[[7, 2, 2]] + + idx = Index([1, 2, 3, 4], dtype="int64", name="idx") + with pytest.raises(KeyError, match="not in index"): + Series([0.1, 0.2, 0.3, 0.4], index=idx, name="s").loc[[4, 5, 5]] + + # iloc + exp_idx = Index([2, 2, 1, 1], dtype="int64", name="idx") + expected = Series([0.2, 0.2, 0.1, 0.1], index=exp_idx, name="s") + result = ser.iloc[[1, 1, 0, 0]] + tm.assert_series_equal(result, expected, check_index_type=True) + + @pytest.mark.parametrize("key", [100, 100.0]) + def test_setitem_with_expansion_numeric_into_datetimeindex(self, key): + # GH#4940 inserting non-strings + orig = DataFrame( + np.random.default_rng(2).standard_normal((10, 4)), + columns=Index(list("ABCD"), dtype=object), + index=date_range("2000-01-01", periods=10, freq="B"), + ) + df = orig.copy() + + df.loc[key, :] = df.iloc[0] + ex_index = Index(list(orig.index) + [key], dtype=object, name=orig.index.name) + ex_data = np.concatenate([orig.values, df.iloc[[0]].values], axis=0) + expected = DataFrame(ex_data, index=ex_index, columns=orig.columns) + + tm.assert_frame_equal(df, expected) + + def test_partial_set_invalid(self): + # GH 4940 + # allow only setting of 'valid' values + + orig = DataFrame( + np.random.default_rng(2).standard_normal((10, 4)), + columns=Index(list("ABCD"), dtype=object), + index=date_range("2000-01-01", periods=10, freq="B"), + ) + + # allow object conversion here + df = orig.copy() + df.loc["a", :] = df.iloc[0] + ser = Series(df.iloc[0], name="a") + exp = pd.concat([orig, DataFrame(ser).T.infer_objects()]) + tm.assert_frame_equal(df, exp) + tm.assert_index_equal(df.index, Index(orig.index.tolist() + ["a"])) + assert df.index.dtype == "object" + + @pytest.mark.parametrize( + "idx,labels,expected_idx", + [ + ( + period_range(start="2000", periods=20, freq="D"), + ["2000-01-04", "2000-01-08", "2000-01-12"], + [ + Period("2000-01-04", freq="D"), + Period("2000-01-08", freq="D"), + Period("2000-01-12", freq="D"), + ], + ), + ( + date_range(start="2000", periods=20, freq="D"), + ["2000-01-04", "2000-01-08", "2000-01-12"], + [ + Timestamp("2000-01-04"), + Timestamp("2000-01-08"), + Timestamp("2000-01-12"), + ], + ), + ( + pd.timedelta_range(start="1 day", periods=20), + ["4D", "8D", "12D"], + [pd.Timedelta("4 day"), pd.Timedelta("8 day"), pd.Timedelta("12 day")], + ), + ], + ) + def test_loc_with_list_of_strings_representing_datetimes( + self, idx, labels, expected_idx, frame_or_series + ): + # GH 11278 + obj = frame_or_series(range(20), index=idx) + + expected_value = [3, 7, 11] + expected = frame_or_series(expected_value, expected_idx) + + tm.assert_equal(expected, obj.loc[labels]) + if frame_or_series is Series: + tm.assert_series_equal(expected, obj[labels]) + + @pytest.mark.parametrize( + "idx,labels", + [ + ( + period_range(start="2000", periods=20, freq="D"), + ["2000-01-04", "2000-01-30"], + ), + ( + date_range(start="2000", periods=20, freq="D"), + ["2000-01-04", "2000-01-30"], + ), + (pd.timedelta_range(start="1 day", periods=20), ["3 day", "30 day"]), + ], + ) + def test_loc_with_list_of_strings_representing_datetimes_missing_value( + self, idx, labels + ): + # GH 11278 + ser = Series(range(20), index=idx) + df = DataFrame(range(20), index=idx) + msg = r"not in index" + + with pytest.raises(KeyError, match=msg): + ser.loc[labels] + with pytest.raises(KeyError, match=msg): + ser[labels] + with pytest.raises(KeyError, match=msg): + df.loc[labels] + + @pytest.mark.parametrize( + "idx,labels,msg", + [ + ( + period_range(start="2000", periods=20, freq="D"), + Index(["4D", "8D"], dtype=object), + ( + r"None of \[Index\(\['4D', '8D'\], dtype='object'\)\] " + r"are in the \[index\]" + ), + ), + ( + date_range(start="2000", periods=20, freq="D"), + Index(["4D", "8D"], dtype=object), + ( + r"None of \[Index\(\['4D', '8D'\], dtype='object'\)\] " + r"are in the \[index\]" + ), + ), + ( + pd.timedelta_range(start="1 day", periods=20), + Index(["2000-01-04", "2000-01-08"], dtype=object), + ( + r"None of \[Index\(\['2000-01-04', '2000-01-08'\], " + r"dtype='object'\)\] are in the \[index\]" + ), + ), + ], + ) + def test_loc_with_list_of_strings_representing_datetimes_not_matched_type( + self, idx, labels, msg + ): + # GH 11278 + ser = Series(range(20), index=idx) + df = DataFrame(range(20), index=idx) + + with pytest.raises(KeyError, match=msg): + ser.loc[labels] + with pytest.raises(KeyError, match=msg): + ser[labels] + with pytest.raises(KeyError, match=msg): + df.loc[labels] + + +class TestStringSlicing: + def test_slice_irregular_datetime_index_with_nan(self): + # GH36953 + index = pd.to_datetime(["2012-01-01", "2012-01-02", "2012-01-03", None]) + df = DataFrame(range(len(index)), index=index) + expected = DataFrame(range(len(index[:3])), index=index[:3]) + with pytest.raises(KeyError, match="non-existing keys is not allowed"): + # Upper bound is not in index (which is unordered) + # GH53983 + # GH37819 + df["2012-01-01":"2012-01-04"] + # Need this precision for right bound since the right slice + # bound is "rounded" up to the largest timepoint smaller than + # the next "resolution"-step of the provided point. + # e.g. 2012-01-03 is rounded up to 2012-01-04 - 1ns + result = df["2012-01-01":"2012-01-03 00:00:00.000000000"] + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_scalar.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_scalar.py new file mode 100644 index 0000000000000000000000000000000000000000..29e3dc0aebe9551ae94566904372dde3563fbef9 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/indexing/test_scalar.py @@ -0,0 +1,303 @@ +""" test scalar indexing, including at and iat """ +from datetime import ( + datetime, + timedelta, +) +import itertools + +import numpy as np +import pytest + +from pandas import ( + DataFrame, + Series, + Timedelta, + Timestamp, + date_range, +) +import pandas._testing as tm + + +def generate_indices(f, values=False): + """ + generate the indices + if values is True , use the axis values + is False, use the range + """ + axes = f.axes + if values: + axes = (list(range(len(ax))) for ax in axes) + + return itertools.product(*axes) + + +class TestScalar: + @pytest.mark.parametrize("kind", ["series", "frame"]) + @pytest.mark.parametrize("col", ["ints", "uints"]) + def test_iat_set_ints(self, kind, col, request): + f = request.getfixturevalue(f"{kind}_{col}") + indices = generate_indices(f, True) + for i in indices: + f.iat[i] = 1 + expected = f.values[i] + tm.assert_almost_equal(expected, 1) + + @pytest.mark.parametrize("kind", ["series", "frame"]) + @pytest.mark.parametrize("col", ["labels", "ts", "floats"]) + def test_iat_set_other(self, kind, col, request): + f = request.getfixturevalue(f"{kind}_{col}") + msg = "iAt based indexing can only have integer indexers" + with pytest.raises(ValueError, match=msg): + idx = next(generate_indices(f, False)) + f.iat[idx] = 1 + + @pytest.mark.parametrize("kind", ["series", "frame"]) + @pytest.mark.parametrize("col", ["ints", "uints", "labels", "ts", "floats"]) + def test_at_set_ints_other(self, kind, col, request): + f = request.getfixturevalue(f"{kind}_{col}") + indices = generate_indices(f, False) + for i in indices: + f.at[i] = 1 + expected = f.loc[i] + tm.assert_almost_equal(expected, 1) + + +class TestAtAndiAT: + # at and iat tests that don't need Base class + + def test_float_index_at_iat(self): + ser = Series([1, 2, 3], index=[0.1, 0.2, 0.3]) + for el, item in ser.items(): + assert ser.at[el] == item + for i in range(len(ser)): + assert ser.iat[i] == i + 1 + + def test_at_iat_coercion(self): + # as timestamp is not a tuple! + dates = date_range("1/1/2000", periods=8) + df = DataFrame( + np.random.default_rng(2).standard_normal((8, 4)), + index=dates, + columns=["A", "B", "C", "D"], + ) + s = df["A"] + + result = s.at[dates[5]] + xp = s.values[5] + assert result == xp + + @pytest.mark.parametrize( + "ser, expected", + [ + [ + Series(["2014-01-01", "2014-02-02"], dtype="datetime64[ns]"), + Timestamp("2014-02-02"), + ], + [ + Series(["1 days", "2 days"], dtype="timedelta64[ns]"), + Timedelta("2 days"), + ], + ], + ) + def test_iloc_iat_coercion_datelike(self, indexer_ial, ser, expected): + # GH 7729 + # make sure we are boxing the returns + result = indexer_ial(ser)[1] + assert result == expected + + def test_imethods_with_dups(self): + # GH6493 + # iat/iloc with dups + + s = Series(range(5), index=[1, 1, 2, 2, 3], dtype="int64") + result = s.iloc[2] + assert result == 2 + result = s.iat[2] + assert result == 2 + + msg = "index 10 is out of bounds for axis 0 with size 5" + with pytest.raises(IndexError, match=msg): + s.iat[10] + msg = "index -10 is out of bounds for axis 0 with size 5" + with pytest.raises(IndexError, match=msg): + s.iat[-10] + + result = s.iloc[[2, 3]] + expected = Series([2, 3], [2, 2], dtype="int64") + tm.assert_series_equal(result, expected) + + df = s.to_frame() + result = df.iloc[2] + expected = Series(2, index=[0], name=2) + tm.assert_series_equal(result, expected) + + result = df.iat[2, 0] + assert result == 2 + + def test_frame_at_with_duplicate_axes(self): + # GH#33041 + arr = np.random.default_rng(2).standard_normal(6).reshape(3, 2) + df = DataFrame(arr, columns=["A", "A"]) + + result = df.at[0, "A"] + expected = df.iloc[0].copy() + + tm.assert_series_equal(result, expected) + + result = df.T.at["A", 0] + tm.assert_series_equal(result, expected) + + # setter + df.at[1, "A"] = 2 + expected = Series([2.0, 2.0], index=["A", "A"], name=1) + tm.assert_series_equal(df.iloc[1], expected) + + def test_at_getitem_dt64tz_values(self): + # gh-15822 + df = DataFrame( + { + "name": ["John", "Anderson"], + "date": [ + Timestamp(2017, 3, 13, 13, 32, 56), + Timestamp(2017, 2, 16, 12, 10, 3), + ], + } + ) + df["date"] = df["date"].dt.tz_localize("Asia/Shanghai") + + expected = Timestamp("2017-03-13 13:32:56+0800", tz="Asia/Shanghai") + + result = df.loc[0, "date"] + assert result == expected + + result = df.at[0, "date"] + assert result == expected + + def test_mixed_index_at_iat_loc_iloc_series(self): + # GH 19860 + s = Series([1, 2, 3, 4, 5], index=["a", "b", "c", 1, 2]) + for el, item in s.items(): + assert s.at[el] == s.loc[el] == item + for i in range(len(s)): + assert s.iat[i] == s.iloc[i] == i + 1 + + with pytest.raises(KeyError, match="^4$"): + s.at[4] + with pytest.raises(KeyError, match="^4$"): + s.loc[4] + + def test_mixed_index_at_iat_loc_iloc_dataframe(self): + # GH 19860 + df = DataFrame( + [[0, 1, 2, 3, 4], [5, 6, 7, 8, 9]], columns=["a", "b", "c", 1, 2] + ) + for rowIdx, row in df.iterrows(): + for el, item in row.items(): + assert df.at[rowIdx, el] == df.loc[rowIdx, el] == item + + for row in range(2): + for i in range(5): + assert df.iat[row, i] == df.iloc[row, i] == row * 5 + i + + with pytest.raises(KeyError, match="^3$"): + df.at[0, 3] + with pytest.raises(KeyError, match="^3$"): + df.loc[0, 3] + + def test_iat_setter_incompatible_assignment(self): + # GH 23236 + result = DataFrame({"a": [0.0, 1.0], "b": [4, 5]}) + result.iat[0, 0] = None + expected = DataFrame({"a": [None, 1], "b": [4, 5]}) + tm.assert_frame_equal(result, expected) + + +def test_iat_dont_wrap_object_datetimelike(): + # GH#32809 .iat calls go through DataFrame._get_value, should not + # call maybe_box_datetimelike + dti = date_range("2016-01-01", periods=3) + tdi = dti - dti + ser = Series(dti.to_pydatetime(), dtype=object) + ser2 = Series(tdi.to_pytimedelta(), dtype=object) + df = DataFrame({"A": ser, "B": ser2}) + assert (df.dtypes == object).all() + + for result in [df.at[0, "A"], df.iat[0, 0], df.loc[0, "A"], df.iloc[0, 0]]: + assert result is ser[0] + assert isinstance(result, datetime) + assert not isinstance(result, Timestamp) + + for result in [df.at[1, "B"], df.iat[1, 1], df.loc[1, "B"], df.iloc[1, 1]]: + assert result is ser2[1] + assert isinstance(result, timedelta) + assert not isinstance(result, Timedelta) + + +def test_at_with_tuple_index_get(): + # GH 26989 + # DataFrame.at getter works with Index of tuples + df = DataFrame({"a": [1, 2]}, index=[(1, 2), (3, 4)]) + assert df.index.nlevels == 1 + assert df.at[(1, 2), "a"] == 1 + + # Series.at getter works with Index of tuples + series = df["a"] + assert series.index.nlevels == 1 + assert series.at[(1, 2)] == 1 + + +@pytest.mark.filterwarnings("ignore:Setting a value on a view:FutureWarning") +def test_at_with_tuple_index_set(): + # GH 26989 + # DataFrame.at setter works with Index of tuples + df = DataFrame({"a": [1, 2]}, index=[(1, 2), (3, 4)]) + assert df.index.nlevels == 1 + df.at[(1, 2), "a"] = 2 + assert df.at[(1, 2), "a"] == 2 + + # Series.at setter works with Index of tuples + series = df["a"] + assert series.index.nlevels == 1 + series.at[1, 2] = 3 + assert series.at[1, 2] == 3 + + +class TestMultiIndexScalar: + def test_multiindex_at_get(self): + # GH 26989 + # DataFrame.at and DataFrame.loc getter works with MultiIndex + df = DataFrame({"a": [1, 2]}, index=[[1, 2], [3, 4]]) + assert df.index.nlevels == 2 + assert df.at[(1, 3), "a"] == 1 + assert df.loc[(1, 3), "a"] == 1 + + # Series.at and Series.loc getter works with MultiIndex + series = df["a"] + assert series.index.nlevels == 2 + assert series.at[1, 3] == 1 + assert series.loc[1, 3] == 1 + + @pytest.mark.filterwarnings("ignore:Setting a value on a view:FutureWarning") + def test_multiindex_at_set(self): + # GH 26989 + # DataFrame.at and DataFrame.loc setter works with MultiIndex + df = DataFrame({"a": [1, 2]}, index=[[1, 2], [3, 4]]) + assert df.index.nlevels == 2 + df.at[(1, 3), "a"] = 3 + assert df.at[(1, 3), "a"] == 3 + df.loc[(1, 3), "a"] = 4 + assert df.loc[(1, 3), "a"] == 4 + + # Series.at and Series.loc setter works with MultiIndex + series = df["a"] + assert series.index.nlevels == 2 + series.at[1, 3] = 5 + assert series.at[1, 3] == 5 + series.loc[1, 3] = 6 + assert series.loc[1, 3] == 6 + + def test_multiindex_at_get_one_level(self): + # GH#38053 + s2 = Series((0, 1), index=[[False, True]]) + result = s2.at[False] + assert result == 0 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/interchange/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/interchange/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/interchange/test_impl.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/interchange/test_impl.py new file mode 100644 index 0000000000000000000000000000000000000000..5563ee8b4caed45bea14ddebaf4ad41f2b846ea6 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/interchange/test_impl.py @@ -0,0 +1,616 @@ +from datetime import ( + datetime, + timezone, +) + +import numpy as np +import pytest + +from pandas._libs.tslibs import iNaT +from pandas.compat import ( + is_ci_environment, + is_platform_windows, +) +from pandas.compat.numpy import np_version_lt1p23 + +import pandas as pd +import pandas._testing as tm +from pandas.core.interchange.column import PandasColumn +from pandas.core.interchange.dataframe_protocol import ( + ColumnNullType, + DtypeKind, +) +from pandas.core.interchange.from_dataframe import from_dataframe +from pandas.core.interchange.utils import ArrowCTypes + + +@pytest.fixture +def data_categorical(): + return { + "ordered": pd.Categorical(list("testdata") * 30, ordered=True), + "unordered": pd.Categorical(list("testdata") * 30, ordered=False), + } + + +@pytest.fixture +def string_data(): + return { + "separator data": [ + "abC|DeF,Hik", + "234,3245.67", + "gSaf,qWer|Gre", + "asd3,4sad|", + np.nan, + ] + } + + +@pytest.mark.parametrize("data", [("ordered", True), ("unordered", False)]) +def test_categorical_dtype(data, data_categorical): + df = pd.DataFrame({"A": (data_categorical[data[0]])}) + + col = df.__dataframe__().get_column_by_name("A") + assert col.dtype[0] == DtypeKind.CATEGORICAL + assert col.null_count == 0 + assert col.describe_null == (ColumnNullType.USE_SENTINEL, -1) + assert col.num_chunks() == 1 + desc_cat = col.describe_categorical + assert desc_cat["is_ordered"] == data[1] + assert desc_cat["is_dictionary"] is True + assert isinstance(desc_cat["categories"], PandasColumn) + tm.assert_series_equal( + desc_cat["categories"]._col, pd.Series(["a", "d", "e", "s", "t"]) + ) + + tm.assert_frame_equal(df, from_dataframe(df.__dataframe__())) + + +def test_categorical_pyarrow(): + # GH 49889 + pa = pytest.importorskip("pyarrow", "11.0.0") + + arr = ["Mon", "Tue", "Mon", "Wed", "Mon", "Thu", "Fri", "Sat", "Sun"] + table = pa.table({"weekday": pa.array(arr).dictionary_encode()}) + exchange_df = table.__dataframe__() + result = from_dataframe(exchange_df) + weekday = pd.Categorical( + arr, categories=["Mon", "Tue", "Wed", "Thu", "Fri", "Sat", "Sun"] + ) + expected = pd.DataFrame({"weekday": weekday}) + tm.assert_frame_equal(result, expected) + + +def test_empty_categorical_pyarrow(): + # https://github.com/pandas-dev/pandas/issues/53077 + pa = pytest.importorskip("pyarrow", "11.0.0") + + arr = [None] + table = pa.table({"arr": pa.array(arr, "float64").dictionary_encode()}) + exchange_df = table.__dataframe__() + result = pd.api.interchange.from_dataframe(exchange_df) + expected = pd.DataFrame({"arr": pd.Categorical([np.nan])}) + tm.assert_frame_equal(result, expected) + + +def test_large_string_pyarrow(): + # GH 52795 + pa = pytest.importorskip("pyarrow", "11.0.0") + + arr = ["Mon", "Tue"] + table = pa.table({"weekday": pa.array(arr, "large_string")}) + exchange_df = table.__dataframe__() + result = from_dataframe(exchange_df) + expected = pd.DataFrame({"weekday": ["Mon", "Tue"]}) + tm.assert_frame_equal(result, expected) + + # check round-trip + assert pa.Table.equals(pa.interchange.from_dataframe(result), table) + + +@pytest.mark.parametrize( + ("offset", "length", "expected_values"), + [ + (0, None, [3.3, float("nan"), 2.1]), + (1, None, [float("nan"), 2.1]), + (2, None, [2.1]), + (0, 2, [3.3, float("nan")]), + (0, 1, [3.3]), + (1, 1, [float("nan")]), + ], +) +def test_bitmasks_pyarrow(offset, length, expected_values): + # GH 52795 + pa = pytest.importorskip("pyarrow", "11.0.0") + + arr = [3.3, None, 2.1] + table = pa.table({"arr": arr}).slice(offset, length) + exchange_df = table.__dataframe__() + result = from_dataframe(exchange_df) + expected = pd.DataFrame({"arr": expected_values}) + tm.assert_frame_equal(result, expected) + + # check round-trip + assert pa.Table.equals(pa.interchange.from_dataframe(result), table) + + +@pytest.mark.parametrize( + "data", + [ + lambda: np.random.default_rng(2).integers(-100, 100), + lambda: np.random.default_rng(2).integers(1, 100), + lambda: np.random.default_rng(2).random(), + lambda: np.random.default_rng(2).choice([True, False]), + lambda: datetime( + year=np.random.default_rng(2).integers(1900, 2100), + month=np.random.default_rng(2).integers(1, 12), + day=np.random.default_rng(2).integers(1, 20), + ), + ], +) +def test_dataframe(data): + NCOLS, NROWS = 10, 20 + data = { + f"col{int((i - NCOLS / 2) % NCOLS + 1)}": [data() for _ in range(NROWS)] + for i in range(NCOLS) + } + df = pd.DataFrame(data) + + df2 = df.__dataframe__() + + assert df2.num_columns() == NCOLS + assert df2.num_rows() == NROWS + + assert list(df2.column_names()) == list(data.keys()) + + indices = (0, 2) + names = tuple(list(data.keys())[idx] for idx in indices) + + result = from_dataframe(df2.select_columns(indices)) + expected = from_dataframe(df2.select_columns_by_name(names)) + tm.assert_frame_equal(result, expected) + + assert isinstance(result.attrs["_INTERCHANGE_PROTOCOL_BUFFERS"], list) + assert isinstance(expected.attrs["_INTERCHANGE_PROTOCOL_BUFFERS"], list) + + +def test_missing_from_masked(): + df = pd.DataFrame( + { + "x": np.array([1.0, 2.0, 3.0, 4.0, 0.0]), + "y": np.array([1.5, 2.5, 3.5, 4.5, 0]), + "z": np.array([1.0, 0.0, 1.0, 1.0, 1.0]), + } + ) + + rng = np.random.default_rng(2) + dict_null = {col: rng.integers(low=0, high=len(df)) for col in df.columns} + for col, num_nulls in dict_null.items(): + null_idx = df.index[ + rng.choice(np.arange(len(df)), size=num_nulls, replace=False) + ] + df.loc[null_idx, col] = None + + df2 = df.__dataframe__() + + assert df2.get_column_by_name("x").null_count == dict_null["x"] + assert df2.get_column_by_name("y").null_count == dict_null["y"] + assert df2.get_column_by_name("z").null_count == dict_null["z"] + + +@pytest.mark.parametrize( + "data", + [ + {"x": [1.5, 2.5, 3.5], "y": [9.2, 10.5, 11.8]}, + {"x": [1, 2, 0], "y": [9.2, 10.5, 11.8]}, + { + "x": np.array([True, True, False]), + "y": np.array([1, 2, 0]), + "z": np.array([9.2, 10.5, 11.8]), + }, + ], +) +def test_mixed_data(data): + df = pd.DataFrame(data) + df2 = df.__dataframe__() + + for col_name in df.columns: + assert df2.get_column_by_name(col_name).null_count == 0 + + +def test_mixed_missing(): + df = pd.DataFrame( + { + "x": np.array([True, None, False, None, True]), + "y": np.array([None, 2, None, 1, 2]), + "z": np.array([9.2, 10.5, None, 11.8, None]), + } + ) + + df2 = df.__dataframe__() + + for col_name in df.columns: + assert df2.get_column_by_name(col_name).null_count == 2 + + +def test_string(string_data): + test_str_data = string_data["separator data"] + [""] + df = pd.DataFrame({"A": test_str_data}) + col = df.__dataframe__().get_column_by_name("A") + + assert col.size() == 6 + assert col.null_count == 1 + assert col.dtype[0] == DtypeKind.STRING + assert col.describe_null == (ColumnNullType.USE_BYTEMASK, 0) + + df_sliced = df[1:] + col = df_sliced.__dataframe__().get_column_by_name("A") + assert col.size() == 5 + assert col.null_count == 1 + assert col.dtype[0] == DtypeKind.STRING + assert col.describe_null == (ColumnNullType.USE_BYTEMASK, 0) + + +def test_nonstring_object(): + df = pd.DataFrame({"A": ["a", 10, 1.0, ()]}) + col = df.__dataframe__().get_column_by_name("A") + with pytest.raises(NotImplementedError, match="not supported yet"): + col.dtype + + +def test_datetime(): + df = pd.DataFrame({"A": [pd.Timestamp("2022-01-01"), pd.NaT]}) + col = df.__dataframe__().get_column_by_name("A") + + assert col.size() == 2 + assert col.null_count == 1 + assert col.dtype[0] == DtypeKind.DATETIME + assert col.describe_null == (ColumnNullType.USE_SENTINEL, iNaT) + + tm.assert_frame_equal(df, from_dataframe(df.__dataframe__())) + + +@pytest.mark.skipif(np_version_lt1p23, reason="Numpy > 1.23 required") +def test_categorical_to_numpy_dlpack(): + # https://github.com/pandas-dev/pandas/issues/48393 + df = pd.DataFrame({"A": pd.Categorical(["a", "b", "a"])}) + col = df.__dataframe__().get_column_by_name("A") + result = np.from_dlpack(col.get_buffers()["data"][0]) + expected = np.array([0, 1, 0], dtype="int8") + tm.assert_numpy_array_equal(result, expected) + + +@pytest.mark.parametrize("data", [{}, {"a": []}]) +def test_empty_pyarrow(data): + # GH 53155 + pytest.importorskip("pyarrow", "11.0.0") + from pyarrow.interchange import from_dataframe as pa_from_dataframe + + expected = pd.DataFrame(data) + arrow_df = pa_from_dataframe(expected) + result = from_dataframe(arrow_df) + tm.assert_frame_equal(result, expected, check_column_type=False) + + +def test_multi_chunk_pyarrow() -> None: + pa = pytest.importorskip("pyarrow", "11.0.0") + n_legs = pa.chunked_array([[2, 2, 4], [4, 5, 100]]) + names = ["n_legs"] + table = pa.table([n_legs], names=names) + with pytest.raises( + RuntimeError, + match="Cannot do zero copy conversion into multi-column DataFrame block", + ): + pd.api.interchange.from_dataframe(table, allow_copy=False) + + +def test_multi_chunk_column() -> None: + pytest.importorskip("pyarrow", "11.0.0") + ser = pd.Series([1, 2, None], dtype="Int64[pyarrow]") + df = pd.concat([ser, ser], ignore_index=True).to_frame("a") + df_orig = df.copy() + with pytest.raises( + RuntimeError, match="Found multi-chunk pyarrow array, but `allow_copy` is False" + ): + pd.api.interchange.from_dataframe(df.__dataframe__(allow_copy=False)) + result = pd.api.interchange.from_dataframe(df.__dataframe__(allow_copy=True)) + # Interchange protocol defaults to creating numpy-backed columns, so currently this + # is 'float64'. + expected = pd.DataFrame({"a": [1.0, 2.0, None, 1.0, 2.0, None]}, dtype="float64") + tm.assert_frame_equal(result, expected) + + # Check that the rechunking we did didn't modify the original DataFrame. + tm.assert_frame_equal(df, df_orig) + assert len(df["a"].array._pa_array.chunks) == 2 + assert len(df_orig["a"].array._pa_array.chunks) == 2 + + +def test_timestamp_ns_pyarrow(): + # GH 56712 + pytest.importorskip("pyarrow", "11.0.0") + timestamp_args = { + "year": 2000, + "month": 1, + "day": 1, + "hour": 1, + "minute": 1, + "second": 1, + } + df = pd.Series( + [datetime(**timestamp_args)], + dtype="timestamp[ns][pyarrow]", + name="col0", + ).to_frame() + + dfi = df.__dataframe__() + result = pd.api.interchange.from_dataframe(dfi)["col0"].item() + + expected = pd.Timestamp(**timestamp_args) + assert result == expected + + +@pytest.mark.parametrize("tz", ["UTC", "US/Pacific"]) +@pytest.mark.parametrize("unit", ["s", "ms", "us", "ns"]) +def test_datetimetzdtype(tz, unit): + # GH 54239 + tz_data = ( + pd.date_range("2018-01-01", periods=5, freq="D").tz_localize(tz).as_unit(unit) + ) + df = pd.DataFrame({"ts_tz": tz_data}) + tm.assert_frame_equal(df, from_dataframe(df.__dataframe__())) + + +def test_interchange_from_non_pandas_tz_aware(request): + # GH 54239, 54287 + pa = pytest.importorskip("pyarrow", "11.0.0") + import pyarrow.compute as pc + + if is_platform_windows() and is_ci_environment(): + mark = pytest.mark.xfail( + raises=pa.ArrowInvalid, + reason=( + "TODO: Set ARROW_TIMEZONE_DATABASE environment variable " + "on CI to path to the tzdata for pyarrow." + ), + ) + request.applymarker(mark) + + arr = pa.array([datetime(2020, 1, 1), None, datetime(2020, 1, 2)]) + arr = pc.assume_timezone(arr, "Asia/Kathmandu") + table = pa.table({"arr": arr}) + exchange_df = table.__dataframe__() + result = from_dataframe(exchange_df) + + expected = pd.DataFrame( + ["2020-01-01 00:00:00+05:45", "NaT", "2020-01-02 00:00:00+05:45"], + columns=["arr"], + dtype="datetime64[us, Asia/Kathmandu]", + ) + tm.assert_frame_equal(expected, result) + + +def test_interchange_from_corrected_buffer_dtypes(monkeypatch) -> None: + # https://github.com/pandas-dev/pandas/issues/54781 + df = pd.DataFrame({"a": ["foo", "bar"]}).__dataframe__() + interchange = df.__dataframe__() + column = interchange.get_column_by_name("a") + buffers = column.get_buffers() + buffers_data = buffers["data"] + buffer_dtype = buffers_data[1] + buffer_dtype = ( + DtypeKind.UINT, + 8, + ArrowCTypes.UINT8, + buffer_dtype[3], + ) + buffers["data"] = (buffers_data[0], buffer_dtype) + column.get_buffers = lambda: buffers + interchange.get_column_by_name = lambda _: column + monkeypatch.setattr(df, "__dataframe__", lambda allow_copy: interchange) + pd.api.interchange.from_dataframe(df) + + +def test_empty_string_column(): + # https://github.com/pandas-dev/pandas/issues/56703 + df = pd.DataFrame({"a": []}, dtype=str) + df2 = df.__dataframe__() + result = pd.api.interchange.from_dataframe(df2) + tm.assert_frame_equal(df, result) + + +def test_large_string(): + # GH#56702 + pytest.importorskip("pyarrow") + df = pd.DataFrame({"a": ["x"]}, dtype="large_string[pyarrow]") + result = pd.api.interchange.from_dataframe(df.__dataframe__()) + expected = pd.DataFrame({"a": ["x"]}, dtype="str") + tm.assert_frame_equal(result, expected) + + +def test_non_str_names(): + # https://github.com/pandas-dev/pandas/issues/56701 + df = pd.Series([1, 2, 3], name=0).to_frame() + names = df.__dataframe__().column_names() + assert names == ["0"] + + +def test_non_str_names_w_duplicates(): + # https://github.com/pandas-dev/pandas/issues/56701 + df = pd.DataFrame({"0": [1, 2, 3], 0: [4, 5, 6]}) + dfi = df.__dataframe__() + with pytest.raises( + TypeError, + match=( + "Expected a Series, got a DataFrame. This likely happened because you " + "called __dataframe__ on a DataFrame which, after converting column " + r"names to string, resulted in duplicated names: Index\(\['0', '0'\], " + r"dtype='(str|object)'\). Please rename these columns before using the " + "interchange protocol." + ), + ): + pd.api.interchange.from_dataframe(dfi, allow_copy=False) + + +@pytest.mark.parametrize( + ("data", "dtype", "expected_dtype"), + [ + ([1, 2, None], "Int64", "int64"), + ([1, 2, None], "Int64[pyarrow]", "int64"), + ([1, 2, None], "Int8", "int8"), + ([1, 2, None], "Int8[pyarrow]", "int8"), + ( + [1, 2, None], + "UInt64", + "uint64", + ), + ( + [1, 2, None], + "UInt64[pyarrow]", + "uint64", + ), + ([1.0, 2.25, None], "Float32", "float32"), + ([1.0, 2.25, None], "Float32[pyarrow]", "float32"), + ([True, False, None], "boolean", "bool"), + ([True, False, None], "boolean[pyarrow]", "bool"), + (["much ado", "about", None], pd.StringDtype(na_value=np.nan), "large_string"), + (["much ado", "about", None], "string[pyarrow]", "large_string"), + ( + [datetime(2020, 1, 1), datetime(2020, 1, 2), None], + "timestamp[ns][pyarrow]", + "timestamp[ns]", + ), + ( + [datetime(2020, 1, 1), datetime(2020, 1, 2), None], + "timestamp[us][pyarrow]", + "timestamp[us]", + ), + ( + [ + datetime(2020, 1, 1, tzinfo=timezone.utc), + datetime(2020, 1, 2, tzinfo=timezone.utc), + None, + ], + "timestamp[us, Asia/Kathmandu][pyarrow]", + "timestamp[us, tz=Asia/Kathmandu]", + ), + ], +) +def test_pandas_nullable_with_missing_values( + data: list, dtype: str, expected_dtype: str +) -> None: + # https://github.com/pandas-dev/pandas/issues/57643 + # https://github.com/pandas-dev/pandas/issues/57664 + pa = pytest.importorskip("pyarrow", "11.0.0") + import pyarrow.interchange as pai + + if expected_dtype == "timestamp[us, tz=Asia/Kathmandu]": + expected_dtype = pa.timestamp("us", "Asia/Kathmandu") + + df = pd.DataFrame({"a": data}, dtype=dtype) + result = pai.from_dataframe(df.__dataframe__())["a"] + assert result.type == expected_dtype + assert result[0].as_py() == data[0] + assert result[1].as_py() == data[1] + assert result[2].as_py() is None + + +@pytest.mark.parametrize( + ("data", "dtype", "expected_dtype"), + [ + ([1, 2, 3], "Int64", "int64"), + ([1, 2, 3], "Int64[pyarrow]", "int64"), + ([1, 2, 3], "Int8", "int8"), + ([1, 2, 3], "Int8[pyarrow]", "int8"), + ( + [1, 2, 3], + "UInt64", + "uint64", + ), + ( + [1, 2, 3], + "UInt64[pyarrow]", + "uint64", + ), + ([1.0, 2.25, 5.0], "Float32", "float32"), + ([1.0, 2.25, 5.0], "Float32[pyarrow]", "float32"), + ([True, False, False], "boolean", "bool"), + ([True, False, False], "boolean[pyarrow]", "bool"), + ( + ["much ado", "about", "nothing"], + pd.StringDtype(na_value=np.nan), + "large_string", + ), + (["much ado", "about", "nothing"], "string[pyarrow]", "large_string"), + ( + [datetime(2020, 1, 1), datetime(2020, 1, 2), datetime(2020, 1, 3)], + "timestamp[ns][pyarrow]", + "timestamp[ns]", + ), + ( + [datetime(2020, 1, 1), datetime(2020, 1, 2), datetime(2020, 1, 3)], + "timestamp[us][pyarrow]", + "timestamp[us]", + ), + ( + [ + datetime(2020, 1, 1, tzinfo=timezone.utc), + datetime(2020, 1, 2, tzinfo=timezone.utc), + datetime(2020, 1, 3, tzinfo=timezone.utc), + ], + "timestamp[us, Asia/Kathmandu][pyarrow]", + "timestamp[us, tz=Asia/Kathmandu]", + ), + ], +) +def test_pandas_nullable_without_missing_values( + data: list, dtype: str, expected_dtype: str +) -> None: + # https://github.com/pandas-dev/pandas/issues/57643 + pa = pytest.importorskip("pyarrow", "11.0.0") + import pyarrow.interchange as pai + + if expected_dtype == "timestamp[us, tz=Asia/Kathmandu]": + expected_dtype = pa.timestamp("us", "Asia/Kathmandu") + + df = pd.DataFrame({"a": data}, dtype=dtype) + result = pai.from_dataframe(df.__dataframe__())["a"] + assert result.type == expected_dtype + assert result[0].as_py() == data[0] + assert result[1].as_py() == data[1] + assert result[2].as_py() == data[2] + + +def test_string_validity_buffer() -> None: + # https://github.com/pandas-dev/pandas/issues/57761 + pytest.importorskip("pyarrow", "11.0.0") + df = pd.DataFrame({"a": ["x"]}, dtype="large_string[pyarrow]") + result = df.__dataframe__().get_column_by_name("a").get_buffers()["validity"] + assert result is None + + +def test_string_validity_buffer_no_missing() -> None: + # https://github.com/pandas-dev/pandas/issues/57762 + pytest.importorskip("pyarrow", "11.0.0") + df = pd.DataFrame({"a": ["x", None]}, dtype="large_string[pyarrow]") + validity = df.__dataframe__().get_column_by_name("a").get_buffers()["validity"] + assert validity is not None + result = validity[1] + expected = (DtypeKind.BOOL, 1, ArrowCTypes.BOOL, "=") + assert result == expected + + +def test_empty_dataframe(): + # https://github.com/pandas-dev/pandas/issues/56700 + df = pd.DataFrame({"a": []}, dtype="int8") + dfi = df.__dataframe__() + result = pd.api.interchange.from_dataframe(dfi, allow_copy=False) + expected = pd.DataFrame({"a": []}, dtype="int8") + tm.assert_frame_equal(result, expected) + + +def test_from_dataframe_list_dtype(): + pa = pytest.importorskip("pyarrow", "14.0.0") + data = {"a": [[1, 2], [4, 5, 6]]} + tbl = pa.table(data) + result = from_dataframe(tbl) + expected = pd.DataFrame(data) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/interchange/test_spec_conformance.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/interchange/test_spec_conformance.py new file mode 100644 index 0000000000000000000000000000000000000000..7c02379c118539032cb79d682d4baa2c7ae1fb81 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/interchange/test_spec_conformance.py @@ -0,0 +1,175 @@ +""" +A verbatim copy (vendored) of the spec tests. +Taken from https://github.com/data-apis/dataframe-api +""" +import ctypes +import math + +import pytest + +import pandas as pd + + +@pytest.fixture +def df_from_dict(): + def maker(dct, is_categorical=False): + df = pd.DataFrame(dct) + return df.astype("category") if is_categorical else df + + return maker + + +@pytest.mark.parametrize( + "test_data", + [ + {"a": ["foo", "bar"], "b": ["baz", "qux"]}, + {"a": [1.5, 2.5, 3.5], "b": [9.2, 10.5, 11.8]}, + {"A": [1, 2, 3, 4], "B": [1, 2, 3, 4]}, + ], + ids=["str_data", "float_data", "int_data"], +) +def test_only_one_dtype(test_data, df_from_dict): + columns = list(test_data.keys()) + df = df_from_dict(test_data) + dfX = df.__dataframe__() + + column_size = len(test_data[columns[0]]) + for column in columns: + null_count = dfX.get_column_by_name(column).null_count + assert null_count == 0 + assert isinstance(null_count, int) + assert dfX.get_column_by_name(column).size() == column_size + assert dfX.get_column_by_name(column).offset == 0 + + +def test_mixed_dtypes(df_from_dict): + df = df_from_dict( + { + "a": [1, 2, 3], # dtype kind INT = 0 + "b": [3, 4, 5], # dtype kind INT = 0 + "c": [1.5, 2.5, 3.5], # dtype kind FLOAT = 2 + "d": [9, 10, 11], # dtype kind INT = 0 + "e": [True, False, True], # dtype kind BOOLEAN = 20 + "f": ["a", "", "c"], # dtype kind STRING = 21 + } + ) + dfX = df.__dataframe__() + # for meanings of dtype[0] see the spec; we cannot import the spec here as this + # file is expected to be vendored *anywhere*; + # values for dtype[0] are explained above + columns = {"a": 0, "b": 0, "c": 2, "d": 0, "e": 20, "f": 21} + + for column, kind in columns.items(): + colX = dfX.get_column_by_name(column) + assert colX.null_count == 0 + assert isinstance(colX.null_count, int) + assert colX.size() == 3 + assert colX.offset == 0 + + assert colX.dtype[0] == kind + + assert dfX.get_column_by_name("c").dtype[1] == 64 + + +def test_na_float(df_from_dict): + df = df_from_dict({"a": [1.0, math.nan, 2.0]}) + dfX = df.__dataframe__() + colX = dfX.get_column_by_name("a") + assert colX.null_count == 1 + assert isinstance(colX.null_count, int) + + +def test_noncategorical(df_from_dict): + df = df_from_dict({"a": [1, 2, 3]}) + dfX = df.__dataframe__() + colX = dfX.get_column_by_name("a") + with pytest.raises(TypeError, match=".*categorical.*"): + colX.describe_categorical + + +def test_categorical(df_from_dict): + df = df_from_dict( + {"weekday": ["Mon", "Tue", "Mon", "Wed", "Mon", "Thu", "Fri", "Sat", "Sun"]}, + is_categorical=True, + ) + + colX = df.__dataframe__().get_column_by_name("weekday") + categorical = colX.describe_categorical + assert isinstance(categorical["is_ordered"], bool) + assert isinstance(categorical["is_dictionary"], bool) + + +def test_dataframe(df_from_dict): + df = df_from_dict( + {"x": [True, True, False], "y": [1, 2, 0], "z": [9.2, 10.5, 11.8]} + ) + dfX = df.__dataframe__() + + assert dfX.num_columns() == 3 + assert dfX.num_rows() == 3 + assert dfX.num_chunks() == 1 + assert list(dfX.column_names()) == ["x", "y", "z"] + assert list(dfX.select_columns((0, 2)).column_names()) == list( + dfX.select_columns_by_name(("x", "z")).column_names() + ) + + +@pytest.mark.parametrize(["size", "n_chunks"], [(10, 3), (12, 3), (12, 5)]) +def test_df_get_chunks(size, n_chunks, df_from_dict): + df = df_from_dict({"x": list(range(size))}) + dfX = df.__dataframe__() + chunks = list(dfX.get_chunks(n_chunks)) + assert len(chunks) == n_chunks + assert sum(chunk.num_rows() for chunk in chunks) == size + + +@pytest.mark.parametrize(["size", "n_chunks"], [(10, 3), (12, 3), (12, 5)]) +def test_column_get_chunks(size, n_chunks, df_from_dict): + df = df_from_dict({"x": list(range(size))}) + dfX = df.__dataframe__() + chunks = list(dfX.get_column(0).get_chunks(n_chunks)) + assert len(chunks) == n_chunks + assert sum(chunk.size() for chunk in chunks) == size + + +def test_get_columns(df_from_dict): + df = df_from_dict({"a": [0, 1], "b": [2.5, 3.5]}) + dfX = df.__dataframe__() + for colX in dfX.get_columns(): + assert colX.size() == 2 + assert colX.num_chunks() == 1 + # for meanings of dtype[0] see the spec; we cannot import the spec here as this + # file is expected to be vendored *anywhere* + assert dfX.get_column(0).dtype[0] == 0 # INT + assert dfX.get_column(1).dtype[0] == 2 # FLOAT + + +def test_buffer(df_from_dict): + arr = [0, 1, -1] + df = df_from_dict({"a": arr}) + dfX = df.__dataframe__() + colX = dfX.get_column(0) + bufX = colX.get_buffers() + + dataBuf, dataDtype = bufX["data"] + + assert dataBuf.bufsize > 0 + assert dataBuf.ptr != 0 + device, _ = dataBuf.__dlpack_device__() + + # for meanings of dtype[0] see the spec; we cannot import the spec here as this + # file is expected to be vendored *anywhere* + assert dataDtype[0] == 0 # INT + + if device == 1: # CPU-only as we're going to directly read memory here + bitwidth = dataDtype[1] + ctype = { + 8: ctypes.c_int8, + 16: ctypes.c_int16, + 32: ctypes.c_int32, + 64: ctypes.c_int64, + }[bitwidth] + + for idx, truth in enumerate(arr): + val = ctype.from_address(dataBuf.ptr + idx * (bitwidth // 8)).value + assert val == truth, f"Buffer at index {idx} mismatch" diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/interchange/test_utils.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/interchange/test_utils.py new file mode 100644 index 0000000000000000000000000000000000000000..a47bc2752ff32f5eb7630a3960e7611242cb73e3 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/interchange/test_utils.py @@ -0,0 +1,89 @@ +import numpy as np +import pytest + +import pandas as pd +from pandas.core.interchange.utils import dtype_to_arrow_c_fmt + +# TODO: use ArrowSchema to get reference C-string. +# At the time, there is no way to access ArrowSchema holding a type format string +# from python. The only way to access it is to export the structure to a C-pointer, +# see DataType._export_to_c() method defined in +# https://github.com/apache/arrow/blob/master/python/pyarrow/types.pxi + + +@pytest.mark.parametrize( + "pandas_dtype, c_string", + [ + (np.dtype("bool"), "b"), + (np.dtype("int8"), "c"), + (np.dtype("uint8"), "C"), + (np.dtype("int16"), "s"), + (np.dtype("uint16"), "S"), + (np.dtype("int32"), "i"), + (np.dtype("uint32"), "I"), + (np.dtype("int64"), "l"), + (np.dtype("uint64"), "L"), + (np.dtype("float16"), "e"), + (np.dtype("float32"), "f"), + (np.dtype("float64"), "g"), + (pd.Series(["a"]).dtype, "u"), + ( + pd.Series([0]).astype("datetime64[ns]").dtype, + "tsn:", + ), + (pd.CategoricalDtype(["a"]), "l"), + (np.dtype("O"), "u"), + ], +) +def test_dtype_to_arrow_c_fmt(pandas_dtype, c_string): # PR01 + """Test ``dtype_to_arrow_c_fmt`` utility function.""" + assert dtype_to_arrow_c_fmt(pandas_dtype) == c_string + + +@pytest.mark.parametrize( + "pa_dtype, args_kwargs, c_string", + [ + ["null", {}, "n"], + ["bool_", {}, "b"], + ["uint8", {}, "C"], + ["uint16", {}, "S"], + ["uint32", {}, "I"], + ["uint64", {}, "L"], + ["int8", {}, "c"], + ["int16", {}, "S"], + ["int32", {}, "i"], + ["int64", {}, "l"], + ["float16", {}, "e"], + ["float32", {}, "f"], + ["float64", {}, "g"], + ["string", {}, "u"], + ["binary", {}, "z"], + ["time32", ("s",), "tts"], + ["time32", ("ms",), "ttm"], + ["time64", ("us",), "ttu"], + ["time64", ("ns",), "ttn"], + ["date32", {}, "tdD"], + ["date64", {}, "tdm"], + ["timestamp", {"unit": "s"}, "tss:"], + ["timestamp", {"unit": "ms"}, "tsm:"], + ["timestamp", {"unit": "us"}, "tsu:"], + ["timestamp", {"unit": "ns"}, "tsn:"], + ["timestamp", {"unit": "ns", "tz": "UTC"}, "tsn:UTC"], + ["duration", ("s",), "tDs"], + ["duration", ("ms",), "tDm"], + ["duration", ("us",), "tDu"], + ["duration", ("ns",), "tDn"], + ["decimal128", {"precision": 4, "scale": 2}, "d:4,2"], + ], +) +def test_dtype_to_arrow_c_fmt_arrowdtype(pa_dtype, args_kwargs, c_string): + # GH 52323 + pa = pytest.importorskip("pyarrow") + if not args_kwargs: + pa_type = getattr(pa, pa_dtype)() + elif isinstance(args_kwargs, tuple): + pa_type = getattr(pa, pa_dtype)(*args_kwargs) + else: + pa_type = getattr(pa, pa_dtype)(**args_kwargs) + arrow_type = pd.ArrowDtype(pa_type) + assert dtype_to_arrow_c_fmt(arrow_type) == c_string diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/internals/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/internals/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/internals/test_api.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/internals/test_api.py new file mode 100644 index 0000000000000000000000000000000000000000..1251a6ae97a1cb9304de036dba252de54e7fb10b --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/internals/test_api.py @@ -0,0 +1,86 @@ +""" +Tests for the pseudo-public API implemented in internals/api.py and exposed +in core.internals +""" + +import pytest + +import pandas as pd +import pandas._testing as tm +from pandas.core import internals +from pandas.core.internals import api + + +def test_internals_api(): + assert internals.make_block is api.make_block + + +def test_namespace(): + # SUBJECT TO CHANGE + + modules = [ + "blocks", + "concat", + "managers", + "construction", + "array_manager", + "base", + "api", + "ops", + ] + expected = [ + "make_block", + "DataManager", + "ArrayManager", + "BlockManager", + "SingleDataManager", + "SingleBlockManager", + "SingleArrayManager", + "concatenate_managers", + ] + + result = [x for x in dir(internals) if not x.startswith("__")] + assert set(result) == set(expected + modules) + + +@pytest.mark.parametrize( + "name", + [ + "NumericBlock", + "ObjectBlock", + "Block", + "ExtensionBlock", + "DatetimeTZBlock", + ], +) +def test_deprecations(name): + # GH#55139 + msg = f"{name} is deprecated.* Use public APIs instead" + with tm.assert_produces_warning(DeprecationWarning, match=msg): + getattr(internals, name) + + if name not in ["NumericBlock", "ObjectBlock"]: + # NumericBlock and ObjectBlock are not in the internals.api namespace + with tm.assert_produces_warning(DeprecationWarning, match=msg): + getattr(api, name) + + +def test_make_block_2d_with_dti(): + # GH#41168 + dti = pd.date_range("2012", periods=3, tz="UTC") + blk = api.make_block(dti, placement=[0]) + + assert blk.shape == (1, 3) + assert blk.values.shape == (1, 3) + + +def test_create_block_manager_from_blocks_deprecated(): + # GH#33892 + # If they must, downstream packages should get this from internals.api, + # not internals. + msg = ( + "create_block_manager_from_blocks is deprecated and will be " + "removed in a future version. Use public APIs instead" + ) + with tm.assert_produces_warning(DeprecationWarning, match=msg): + internals.create_block_manager_from_blocks diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/internals/test_internals.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/internals/test_internals.py new file mode 100644 index 0000000000000000000000000000000000000000..30c5d3177c5a569676c20b47e2776f266bb308cc --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/internals/test_internals.py @@ -0,0 +1,1422 @@ +from datetime import ( + date, + datetime, +) +import itertools +import re + +import numpy as np +import pytest + +from pandas._libs.internals import BlockPlacement +from pandas.compat import IS64 +import pandas.util._test_decorators as td + +from pandas.core.dtypes.common import is_scalar + +import pandas as pd +from pandas import ( + Categorical, + DataFrame, + DatetimeIndex, + Index, + IntervalIndex, + Series, + Timedelta, + Timestamp, + period_range, +) +import pandas._testing as tm +import pandas.core.algorithms as algos +from pandas.core.arrays import ( + DatetimeArray, + SparseArray, + TimedeltaArray, +) +from pandas.core.internals import ( + BlockManager, + SingleBlockManager, + make_block, +) +from pandas.core.internals.blocks import ( + ensure_block_shape, + maybe_coerce_values, + new_block, +) + +# this file contains BlockManager specific tests +# TODO(ArrayManager) factor out interleave_dtype tests +pytestmark = td.skip_array_manager_invalid_test + + +@pytest.fixture(params=[new_block, make_block]) +def block_maker(request): + """ + Fixture to test both the internal new_block and pseudo-public make_block. + """ + return request.param + + +@pytest.fixture +def mgr(): + return create_mgr( + "a: f8; b: object; c: f8; d: object; e: f8;" + "f: bool; g: i8; h: complex; i: datetime-1; j: datetime-2;" + "k: M8[ns, US/Eastern]; l: M8[ns, CET];" + ) + + +def assert_block_equal(left, right): + tm.assert_numpy_array_equal(left.values, right.values) + assert left.dtype == right.dtype + assert isinstance(left.mgr_locs, BlockPlacement) + assert isinstance(right.mgr_locs, BlockPlacement) + tm.assert_numpy_array_equal(left.mgr_locs.as_array, right.mgr_locs.as_array) + + +def get_numeric_mat(shape): + arr = np.arange(shape[0]) + return np.lib.stride_tricks.as_strided( + x=arr, shape=shape, strides=(arr.itemsize,) + (0,) * (len(shape) - 1) + ).copy() + + +N = 10 + + +def create_block(typestr, placement, item_shape=None, num_offset=0, maker=new_block): + """ + Supported typestr: + + * float, f8, f4, f2 + * int, i8, i4, i2, i1 + * uint, u8, u4, u2, u1 + * complex, c16, c8 + * bool + * object, string, O + * datetime, dt, M8[ns], M8[ns, tz] + * timedelta, td, m8[ns] + * sparse (SparseArray with fill_value=0.0) + * sparse_na (SparseArray with fill_value=np.nan) + * category, category2 + + """ + placement = BlockPlacement(placement) + num_items = len(placement) + + if item_shape is None: + item_shape = (N,) + + shape = (num_items,) + item_shape + + mat = get_numeric_mat(shape) + + if typestr in ( + "float", + "f8", + "f4", + "f2", + "int", + "i8", + "i4", + "i2", + "i1", + "uint", + "u8", + "u4", + "u2", + "u1", + ): + values = mat.astype(typestr) + num_offset + elif typestr in ("complex", "c16", "c8"): + values = 1.0j * (mat.astype(typestr) + num_offset) + elif typestr in ("object", "string", "O"): + values = np.reshape([f"A{i:d}" for i in mat.ravel() + num_offset], shape) + elif typestr in ("b", "bool"): + values = np.ones(shape, dtype=np.bool_) + elif typestr in ("datetime", "dt", "M8[ns]"): + values = (mat * 1e9).astype("M8[ns]") + elif typestr.startswith("M8[ns"): + # datetime with tz + m = re.search(r"M8\[ns,\s*(\w+\/?\w*)\]", typestr) + assert m is not None, f"incompatible typestr -> {typestr}" + tz = m.groups()[0] + assert num_items == 1, "must have only 1 num items for a tz-aware" + values = DatetimeIndex(np.arange(N) * 10**9, tz=tz)._data + values = ensure_block_shape(values, ndim=len(shape)) + elif typestr in ("timedelta", "td", "m8[ns]"): + values = (mat * 1).astype("m8[ns]") + elif typestr in ("category",): + values = Categorical([1, 1, 2, 2, 3, 3, 3, 3, 4, 4]) + elif typestr in ("category2",): + values = Categorical(["a", "a", "a", "a", "b", "b", "c", "c", "c", "d"]) + elif typestr in ("sparse", "sparse_na"): + if shape[-1] != 10: + # We also are implicitly assuming this in the category cases above + raise NotImplementedError + + assert all(s == 1 for s in shape[:-1]) + if typestr.endswith("_na"): + fill_value = np.nan + else: + fill_value = 0.0 + values = SparseArray( + [fill_value, fill_value, 1, 2, 3, fill_value, 4, 5, fill_value, 6], + fill_value=fill_value, + ) + arr = values.sp_values.view() + arr += num_offset - 1 + else: + raise ValueError(f'Unsupported typestr: "{typestr}"') + + values = maybe_coerce_values(values) + return maker(values, placement=placement, ndim=len(shape)) + + +def create_single_mgr(typestr, num_rows=None): + if num_rows is None: + num_rows = N + + return SingleBlockManager( + create_block(typestr, placement=slice(0, num_rows), item_shape=()), + Index(np.arange(num_rows)), + ) + + +def create_mgr(descr, item_shape=None): + """ + Construct BlockManager from string description. + + String description syntax looks similar to np.matrix initializer. It looks + like this:: + + a,b,c: f8; d,e,f: i8 + + Rules are rather simple: + + * see list of supported datatypes in `create_block` method + * components are semicolon-separated + * each component is `NAME,NAME,NAME: DTYPE_ID` + * whitespace around colons & semicolons are removed + * components with same DTYPE_ID are combined into single block + * to force multiple blocks with same dtype, use '-SUFFIX':: + + 'a:f8-1; b:f8-2; c:f8-foobar' + + """ + if item_shape is None: + item_shape = (N,) + + offset = 0 + mgr_items = [] + block_placements = {} + for d in descr.split(";"): + d = d.strip() + if not len(d): + continue + names, blockstr = d.partition(":")[::2] + blockstr = blockstr.strip() + names = names.strip().split(",") + + mgr_items.extend(names) + placement = list(np.arange(len(names)) + offset) + try: + block_placements[blockstr].extend(placement) + except KeyError: + block_placements[blockstr] = placement + offset += len(names) + + mgr_items = Index(mgr_items) + + blocks = [] + num_offset = 0 + for blockstr, placement in block_placements.items(): + typestr = blockstr.split("-")[0] + blocks.append( + create_block( + typestr, placement, item_shape=item_shape, num_offset=num_offset + ) + ) + num_offset += len(placement) + + sblocks = sorted(blocks, key=lambda b: b.mgr_locs[0]) + return BlockManager( + tuple(sblocks), + [mgr_items] + [Index(np.arange(n)) for n in item_shape], + ) + + +@pytest.fixture +def fblock(): + return create_block("float", [0, 2, 4]) + + +class TestBlock: + def test_constructor(self): + int32block = create_block("i4", [0]) + assert int32block.dtype == np.int32 + + @pytest.mark.parametrize( + "typ, data", + [ + ["float", [0, 2, 4]], + ["complex", [7]], + ["object", [1, 3]], + ["bool", [5]], + ], + ) + def test_pickle(self, typ, data): + blk = create_block(typ, data) + assert_block_equal(tm.round_trip_pickle(blk), blk) + + def test_mgr_locs(self, fblock): + assert isinstance(fblock.mgr_locs, BlockPlacement) + tm.assert_numpy_array_equal( + fblock.mgr_locs.as_array, np.array([0, 2, 4], dtype=np.intp) + ) + + def test_attrs(self, fblock): + assert fblock.shape == fblock.values.shape + assert fblock.dtype == fblock.values.dtype + assert len(fblock) == len(fblock.values) + + def test_copy(self, fblock): + cop = fblock.copy() + assert cop is not fblock + assert_block_equal(fblock, cop) + + def test_delete(self, fblock): + newb = fblock.copy() + locs = newb.mgr_locs + nb = newb.delete(0)[0] + assert newb.mgr_locs is locs + + assert nb is not newb + + tm.assert_numpy_array_equal( + nb.mgr_locs.as_array, np.array([2, 4], dtype=np.intp) + ) + assert not (newb.values[0] == 1).all() + assert (nb.values[0] == 1).all() + + newb = fblock.copy() + locs = newb.mgr_locs + nb = newb.delete(1) + assert len(nb) == 2 + assert newb.mgr_locs is locs + + tm.assert_numpy_array_equal( + nb[0].mgr_locs.as_array, np.array([0], dtype=np.intp) + ) + tm.assert_numpy_array_equal( + nb[1].mgr_locs.as_array, np.array([4], dtype=np.intp) + ) + assert not (newb.values[1] == 2).all() + assert (nb[1].values[0] == 2).all() + + newb = fblock.copy() + nb = newb.delete(2) + assert len(nb) == 1 + tm.assert_numpy_array_equal( + nb[0].mgr_locs.as_array, np.array([0, 2], dtype=np.intp) + ) + assert (nb[0].values[1] == 1).all() + + newb = fblock.copy() + + with pytest.raises(IndexError, match=None): + newb.delete(3) + + def test_delete_datetimelike(self): + # dont use np.delete on values, as that will coerce from DTA/TDA to ndarray + arr = np.arange(20, dtype="i8").reshape(5, 4).view("m8[ns]") + df = DataFrame(arr) + blk = df._mgr.blocks[0] + assert isinstance(blk.values, TimedeltaArray) + + nb = blk.delete(1) + assert len(nb) == 2 + assert isinstance(nb[0].values, TimedeltaArray) + assert isinstance(nb[1].values, TimedeltaArray) + + df = DataFrame(arr.view("M8[ns]")) + blk = df._mgr.blocks[0] + assert isinstance(blk.values, DatetimeArray) + + nb = blk.delete([1, 3]) + assert len(nb) == 2 + assert isinstance(nb[0].values, DatetimeArray) + assert isinstance(nb[1].values, DatetimeArray) + + def test_split(self): + # GH#37799 + values = np.random.default_rng(2).standard_normal((3, 4)) + blk = new_block(values, placement=BlockPlacement([3, 1, 6]), ndim=2) + result = blk._split() + + # check that we get views, not copies + values[:] = -9999 + assert (blk.values == -9999).all() + + assert len(result) == 3 + expected = [ + new_block(values[[0]], placement=BlockPlacement([3]), ndim=2), + new_block(values[[1]], placement=BlockPlacement([1]), ndim=2), + new_block(values[[2]], placement=BlockPlacement([6]), ndim=2), + ] + for res, exp in zip(result, expected): + assert_block_equal(res, exp) + + +class TestBlockManager: + def test_attrs(self): + mgr = create_mgr("a,b,c: f8-1; d,e,f: f8-2") + assert mgr.nblocks == 2 + assert len(mgr) == 6 + + def test_duplicate_ref_loc_failure(self): + tmp_mgr = create_mgr("a:bool; a: f8") + + axes, blocks = tmp_mgr.axes, tmp_mgr.blocks + + blocks[0].mgr_locs = BlockPlacement(np.array([0])) + blocks[1].mgr_locs = BlockPlacement(np.array([0])) + + # test trying to create block manager with overlapping ref locs + + msg = "Gaps in blk ref_locs" + + with pytest.raises(AssertionError, match=msg): + mgr = BlockManager(blocks, axes) + mgr._rebuild_blknos_and_blklocs() + + blocks[0].mgr_locs = BlockPlacement(np.array([0])) + blocks[1].mgr_locs = BlockPlacement(np.array([1])) + mgr = BlockManager(blocks, axes) + mgr.iget(1) + + def test_pickle(self, mgr): + mgr2 = tm.round_trip_pickle(mgr) + tm.assert_frame_equal( + DataFrame._from_mgr(mgr, axes=mgr.axes), + DataFrame._from_mgr(mgr2, axes=mgr2.axes), + ) + + # GH2431 + assert hasattr(mgr2, "_is_consolidated") + assert hasattr(mgr2, "_known_consolidated") + + # reset to False on load + assert not mgr2._is_consolidated + assert not mgr2._known_consolidated + + @pytest.mark.parametrize("mgr_string", ["a,a,a:f8", "a: f8; a: i8"]) + def test_non_unique_pickle(self, mgr_string): + mgr = create_mgr(mgr_string) + mgr2 = tm.round_trip_pickle(mgr) + tm.assert_frame_equal( + DataFrame._from_mgr(mgr, axes=mgr.axes), + DataFrame._from_mgr(mgr2, axes=mgr2.axes), + ) + + def test_categorical_block_pickle(self): + mgr = create_mgr("a: category") + mgr2 = tm.round_trip_pickle(mgr) + tm.assert_frame_equal( + DataFrame._from_mgr(mgr, axes=mgr.axes), + DataFrame._from_mgr(mgr2, axes=mgr2.axes), + ) + + smgr = create_single_mgr("category") + smgr2 = tm.round_trip_pickle(smgr) + tm.assert_series_equal( + Series()._constructor_from_mgr(smgr, axes=smgr.axes), + Series()._constructor_from_mgr(smgr2, axes=smgr2.axes), + ) + + def test_iget(self): + cols = Index(list("abc")) + values = np.random.default_rng(2).random((3, 3)) + block = new_block( + values=values.copy(), + placement=BlockPlacement(np.arange(3, dtype=np.intp)), + ndim=values.ndim, + ) + mgr = BlockManager(blocks=(block,), axes=[cols, Index(np.arange(3))]) + + tm.assert_almost_equal(mgr.iget(0).internal_values(), values[0]) + tm.assert_almost_equal(mgr.iget(1).internal_values(), values[1]) + tm.assert_almost_equal(mgr.iget(2).internal_values(), values[2]) + + def test_set(self): + mgr = create_mgr("a,b,c: int", item_shape=(3,)) + + mgr.insert(len(mgr.items), "d", np.array(["foo"] * 3)) + mgr.iset(1, np.array(["bar"] * 3)) + tm.assert_numpy_array_equal(mgr.iget(0).internal_values(), np.array([0] * 3)) + tm.assert_numpy_array_equal( + mgr.iget(1).internal_values(), np.array(["bar"] * 3, dtype=np.object_) + ) + tm.assert_numpy_array_equal(mgr.iget(2).internal_values(), np.array([2] * 3)) + tm.assert_numpy_array_equal( + mgr.iget(3).internal_values(), np.array(["foo"] * 3, dtype=np.object_) + ) + + def test_set_change_dtype(self, mgr): + mgr.insert(len(mgr.items), "baz", np.zeros(N, dtype=bool)) + + mgr.iset(mgr.items.get_loc("baz"), np.repeat("foo", N)) + idx = mgr.items.get_loc("baz") + assert mgr.iget(idx).dtype == np.object_ + + mgr2 = mgr.consolidate() + mgr2.iset(mgr2.items.get_loc("baz"), np.repeat("foo", N)) + idx = mgr2.items.get_loc("baz") + assert mgr2.iget(idx).dtype == np.object_ + + mgr2.insert( + len(mgr2.items), + "quux", + np.random.default_rng(2).standard_normal(N).astype(int), + ) + idx = mgr2.items.get_loc("quux") + assert mgr2.iget(idx).dtype == np.dtype(int) + + mgr2.iset( + mgr2.items.get_loc("quux"), np.random.default_rng(2).standard_normal(N) + ) + assert mgr2.iget(idx).dtype == np.float64 + + def test_copy(self, mgr): + cp = mgr.copy(deep=False) + for blk, cp_blk in zip(mgr.blocks, cp.blocks): + # view assertion + tm.assert_equal(cp_blk.values, blk.values) + if isinstance(blk.values, np.ndarray): + assert cp_blk.values.base is blk.values.base + else: + # DatetimeTZBlock has DatetimeIndex values + assert cp_blk.values._ndarray.base is blk.values._ndarray.base + + # copy(deep=True) consolidates, so the block-wise assertions will + # fail is mgr is not consolidated + mgr._consolidate_inplace() + cp = mgr.copy(deep=True) + for blk, cp_blk in zip(mgr.blocks, cp.blocks): + bvals = blk.values + cpvals = cp_blk.values + + tm.assert_equal(cpvals, bvals) + + if isinstance(cpvals, np.ndarray): + lbase = cpvals.base + rbase = bvals.base + else: + lbase = cpvals._ndarray.base + rbase = bvals._ndarray.base + + # copy assertion we either have a None for a base or in case of + # some blocks it is an array (e.g. datetimetz), but was copied + if isinstance(cpvals, DatetimeArray): + assert (lbase is None and rbase is None) or (lbase is not rbase) + elif not isinstance(cpvals, np.ndarray): + assert lbase is not rbase + else: + assert lbase is None and rbase is None + + def test_sparse(self): + mgr = create_mgr("a: sparse-1; b: sparse-2") + assert mgr.as_array().dtype == np.float64 + + def test_sparse_mixed(self): + mgr = create_mgr("a: sparse-1; b: sparse-2; c: f8") + assert len(mgr.blocks) == 3 + assert isinstance(mgr, BlockManager) + + @pytest.mark.parametrize( + "mgr_string, dtype", + [("c: f4; d: f2", np.float32), ("c: f4; d: f2; e: f8", np.float64)], + ) + def test_as_array_float(self, mgr_string, dtype): + mgr = create_mgr(mgr_string) + assert mgr.as_array().dtype == dtype + + @pytest.mark.parametrize( + "mgr_string, dtype", + [ + ("a: bool-1; b: bool-2", np.bool_), + ("a: i8-1; b: i8-2; c: i4; d: i2; e: u1", np.int64), + ("c: i4; d: i2; e: u1", np.int32), + ], + ) + def test_as_array_int_bool(self, mgr_string, dtype): + mgr = create_mgr(mgr_string) + assert mgr.as_array().dtype == dtype + + def test_as_array_datetime(self): + mgr = create_mgr("h: datetime-1; g: datetime-2") + assert mgr.as_array().dtype == "M8[ns]" + + def test_as_array_datetime_tz(self): + mgr = create_mgr("h: M8[ns, US/Eastern]; g: M8[ns, CET]") + assert mgr.iget(0).dtype == "datetime64[ns, US/Eastern]" + assert mgr.iget(1).dtype == "datetime64[ns, CET]" + assert mgr.as_array().dtype == "object" + + @pytest.mark.parametrize("t", ["float16", "float32", "float64", "int32", "int64"]) + def test_astype(self, t): + # coerce all + mgr = create_mgr("c: f4; d: f2; e: f8") + + t = np.dtype(t) + tmgr = mgr.astype(t) + assert tmgr.iget(0).dtype.type == t + assert tmgr.iget(1).dtype.type == t + assert tmgr.iget(2).dtype.type == t + + # mixed + mgr = create_mgr("a,b: object; c: bool; d: datetime; e: f4; f: f2; g: f8") + + t = np.dtype(t) + tmgr = mgr.astype(t, errors="ignore") + assert tmgr.iget(2).dtype.type == t + assert tmgr.iget(4).dtype.type == t + assert tmgr.iget(5).dtype.type == t + assert tmgr.iget(6).dtype.type == t + + assert tmgr.iget(0).dtype.type == np.object_ + assert tmgr.iget(1).dtype.type == np.object_ + if t != np.int64: + assert tmgr.iget(3).dtype.type == np.datetime64 + else: + assert tmgr.iget(3).dtype.type == t + + def test_convert(self, using_infer_string): + def _compare(old_mgr, new_mgr): + """compare the blocks, numeric compare ==, object don't""" + old_blocks = set(old_mgr.blocks) + new_blocks = set(new_mgr.blocks) + assert len(old_blocks) == len(new_blocks) + + # compare non-numeric + for b in old_blocks: + found = False + for nb in new_blocks: + if (b.values == nb.values).all(): + found = True + break + assert found + + for b in new_blocks: + found = False + for ob in old_blocks: + if (b.values == ob.values).all(): + found = True + break + assert found + + # noops + mgr = create_mgr("f: i8; g: f8") + new_mgr = mgr.convert(copy=True) + _compare(mgr, new_mgr) + + # convert + mgr = create_mgr("a,b,foo: object; f: i8; g: f8") + mgr.iset(0, np.array(["1"] * N, dtype=np.object_)) + mgr.iset(1, np.array(["2."] * N, dtype=np.object_)) + mgr.iset(2, np.array(["foo."] * N, dtype=np.object_)) + new_mgr = mgr.convert(copy=True) + dtype = "str" if using_infer_string else np.object_ + assert new_mgr.iget(0).dtype == dtype + assert new_mgr.iget(1).dtype == dtype + assert new_mgr.iget(2).dtype == dtype + assert new_mgr.iget(3).dtype == np.int64 + assert new_mgr.iget(4).dtype == np.float64 + + mgr = create_mgr( + "a,b,foo: object; f: i4; bool: bool; dt: datetime; i: i8; g: f8; h: f2" + ) + mgr.iset(0, np.array(["1"] * N, dtype=np.object_)) + mgr.iset(1, np.array(["2."] * N, dtype=np.object_)) + mgr.iset(2, np.array(["foo."] * N, dtype=np.object_)) + new_mgr = mgr.convert(copy=True) + assert new_mgr.iget(0).dtype == dtype + assert new_mgr.iget(1).dtype == dtype + assert new_mgr.iget(2).dtype == dtype + assert new_mgr.iget(3).dtype == np.int32 + assert new_mgr.iget(4).dtype == np.bool_ + assert new_mgr.iget(5).dtype.type, np.datetime64 + assert new_mgr.iget(6).dtype == np.int64 + assert new_mgr.iget(7).dtype == np.float64 + assert new_mgr.iget(8).dtype == np.float16 + + def test_interleave(self): + # self + for dtype in ["f8", "i8", "object", "bool", "complex", "M8[ns]", "m8[ns]"]: + mgr = create_mgr(f"a: {dtype}") + assert mgr.as_array().dtype == dtype + mgr = create_mgr(f"a: {dtype}; b: {dtype}") + assert mgr.as_array().dtype == dtype + + @pytest.mark.parametrize( + "mgr_string, dtype", + [ + ("a: category", "i8"), + ("a: category; b: category", "i8"), + ("a: category; b: category2", "object"), + ("a: category2", "object"), + ("a: category2; b: category2", "object"), + ("a: f8", "f8"), + ("a: f8; b: i8", "f8"), + ("a: f4; b: i8", "f8"), + ("a: f4; b: i8; d: object", "object"), + ("a: bool; b: i8", "object"), + ("a: complex", "complex"), + ("a: f8; b: category", "object"), + ("a: M8[ns]; b: category", "object"), + ("a: M8[ns]; b: bool", "object"), + ("a: M8[ns]; b: i8", "object"), + ("a: m8[ns]; b: bool", "object"), + ("a: m8[ns]; b: i8", "object"), + ("a: M8[ns]; b: m8[ns]", "object"), + ], + ) + def test_interleave_dtype(self, mgr_string, dtype): + # will be converted according the actual dtype of the underlying + mgr = create_mgr("a: category") + assert mgr.as_array().dtype == "i8" + mgr = create_mgr("a: category; b: category2") + assert mgr.as_array().dtype == "object" + mgr = create_mgr("a: category2") + assert mgr.as_array().dtype == "object" + + # combinations + mgr = create_mgr("a: f8") + assert mgr.as_array().dtype == "f8" + mgr = create_mgr("a: f8; b: i8") + assert mgr.as_array().dtype == "f8" + mgr = create_mgr("a: f4; b: i8") + assert mgr.as_array().dtype == "f8" + mgr = create_mgr("a: f4; b: i8; d: object") + assert mgr.as_array().dtype == "object" + mgr = create_mgr("a: bool; b: i8") + assert mgr.as_array().dtype == "object" + mgr = create_mgr("a: complex") + assert mgr.as_array().dtype == "complex" + mgr = create_mgr("a: f8; b: category") + assert mgr.as_array().dtype == "f8" + mgr = create_mgr("a: M8[ns]; b: category") + assert mgr.as_array().dtype == "object" + mgr = create_mgr("a: M8[ns]; b: bool") + assert mgr.as_array().dtype == "object" + mgr = create_mgr("a: M8[ns]; b: i8") + assert mgr.as_array().dtype == "object" + mgr = create_mgr("a: m8[ns]; b: bool") + assert mgr.as_array().dtype == "object" + mgr = create_mgr("a: m8[ns]; b: i8") + assert mgr.as_array().dtype == "object" + mgr = create_mgr("a: M8[ns]; b: m8[ns]") + assert mgr.as_array().dtype == "object" + + def test_consolidate_ordering_issues(self, mgr): + mgr.iset(mgr.items.get_loc("f"), np.random.default_rng(2).standard_normal(N)) + mgr.iset(mgr.items.get_loc("d"), np.random.default_rng(2).standard_normal(N)) + mgr.iset(mgr.items.get_loc("b"), np.random.default_rng(2).standard_normal(N)) + mgr.iset(mgr.items.get_loc("g"), np.random.default_rng(2).standard_normal(N)) + mgr.iset(mgr.items.get_loc("h"), np.random.default_rng(2).standard_normal(N)) + + # we have datetime/tz blocks in mgr + cons = mgr.consolidate() + assert cons.nblocks == 4 + cons = mgr.consolidate().get_numeric_data() + assert cons.nblocks == 1 + assert isinstance(cons.blocks[0].mgr_locs, BlockPlacement) + tm.assert_numpy_array_equal( + cons.blocks[0].mgr_locs.as_array, np.arange(len(cons.items), dtype=np.intp) + ) + + def test_reindex_items(self): + # mgr is not consolidated, f8 & f8-2 blocks + mgr = create_mgr("a: f8; b: i8; c: f8; d: i8; e: f8; f: bool; g: f8-2") + + reindexed = mgr.reindex_axis(["g", "c", "a", "d"], axis=0) + # reindex_axis does not consolidate_inplace, as that risks failing to + # invalidate _item_cache + assert not reindexed.is_consolidated() + + tm.assert_index_equal(reindexed.items, Index(["g", "c", "a", "d"])) + tm.assert_almost_equal( + mgr.iget(6).internal_values(), reindexed.iget(0).internal_values() + ) + tm.assert_almost_equal( + mgr.iget(2).internal_values(), reindexed.iget(1).internal_values() + ) + tm.assert_almost_equal( + mgr.iget(0).internal_values(), reindexed.iget(2).internal_values() + ) + tm.assert_almost_equal( + mgr.iget(3).internal_values(), reindexed.iget(3).internal_values() + ) + + def test_get_numeric_data(self, using_copy_on_write): + mgr = create_mgr( + "int: int; float: float; complex: complex;" + "str: object; bool: bool; obj: object; dt: datetime", + item_shape=(3,), + ) + mgr.iset(5, np.array([1, 2, 3], dtype=np.object_)) + + numeric = mgr.get_numeric_data() + tm.assert_index_equal(numeric.items, Index(["int", "float", "complex", "bool"])) + tm.assert_almost_equal( + mgr.iget(mgr.items.get_loc("float")).internal_values(), + numeric.iget(numeric.items.get_loc("float")).internal_values(), + ) + + # Check sharing + numeric.iset( + numeric.items.get_loc("float"), + np.array([100.0, 200.0, 300.0]), + inplace=True, + ) + if using_copy_on_write: + tm.assert_almost_equal( + mgr.iget(mgr.items.get_loc("float")).internal_values(), + np.array([1.0, 1.0, 1.0]), + ) + else: + tm.assert_almost_equal( + mgr.iget(mgr.items.get_loc("float")).internal_values(), + np.array([100.0, 200.0, 300.0]), + ) + + def test_get_bool_data(self, using_copy_on_write): + mgr = create_mgr( + "int: int; float: float; complex: complex;" + "str: object; bool: bool; obj: object; dt: datetime", + item_shape=(3,), + ) + mgr.iset(6, np.array([True, False, True], dtype=np.object_)) + + bools = mgr.get_bool_data() + tm.assert_index_equal(bools.items, Index(["bool"])) + tm.assert_almost_equal( + mgr.iget(mgr.items.get_loc("bool")).internal_values(), + bools.iget(bools.items.get_loc("bool")).internal_values(), + ) + + bools.iset(0, np.array([True, False, True]), inplace=True) + if using_copy_on_write: + tm.assert_numpy_array_equal( + mgr.iget(mgr.items.get_loc("bool")).internal_values(), + np.array([True, True, True]), + ) + else: + tm.assert_numpy_array_equal( + mgr.iget(mgr.items.get_loc("bool")).internal_values(), + np.array([True, False, True]), + ) + + def test_unicode_repr_doesnt_raise(self): + repr(create_mgr("b,\u05d0: object")) + + @pytest.mark.parametrize( + "mgr_string", ["a,b,c: i8-1; d,e,f: i8-2", "a,a,a: i8-1; b,b,b: i8-2"] + ) + def test_equals(self, mgr_string): + # unique items + bm1 = create_mgr(mgr_string) + bm2 = BlockManager(bm1.blocks[::-1], bm1.axes) + assert bm1.equals(bm2) + + @pytest.mark.parametrize( + "mgr_string", + [ + "a:i8;b:f8", # basic case + "a:i8;b:f8;c:c8;d:b", # many types + "a:i8;e:dt;f:td;g:string", # more types + "a:i8;b:category;c:category2", # categories + "c:sparse;d:sparse_na;b:f8", # sparse + ], + ) + def test_equals_block_order_different_dtypes(self, mgr_string): + # GH 9330 + bm = create_mgr(mgr_string) + block_perms = itertools.permutations(bm.blocks) + for bm_perm in block_perms: + bm_this = BlockManager(tuple(bm_perm), bm.axes) + assert bm.equals(bm_this) + assert bm_this.equals(bm) + + def test_single_mgr_ctor(self): + mgr = create_single_mgr("f8", num_rows=5) + assert mgr.external_values().tolist() == [0.0, 1.0, 2.0, 3.0, 4.0] + + @pytest.mark.parametrize("value", [1, "True", [1, 2, 3], 5.0]) + def test_validate_bool_args(self, value): + bm1 = create_mgr("a,b,c: i8-1; d,e,f: i8-2") + + msg = ( + 'For argument "inplace" expected type bool, ' + f"received type {type(value).__name__}." + ) + with pytest.raises(ValueError, match=msg): + bm1.replace_list([1], [2], inplace=value) + + def test_iset_split_block(self): + bm = create_mgr("a,b,c: i8; d: f8") + bm._iset_split_block(0, np.array([0])) + tm.assert_numpy_array_equal( + bm.blklocs, np.array([0, 0, 1, 0], dtype="int64" if IS64 else "int32") + ) + # First indexer currently does not have a block associated with it in case + tm.assert_numpy_array_equal( + bm.blknos, np.array([0, 0, 0, 1], dtype="int64" if IS64 else "int32") + ) + assert len(bm.blocks) == 2 + + def test_iset_split_block_values(self): + bm = create_mgr("a,b,c: i8; d: f8") + bm._iset_split_block(0, np.array([0]), np.array([list(range(10))])) + tm.assert_numpy_array_equal( + bm.blklocs, np.array([0, 0, 1, 0], dtype="int64" if IS64 else "int32") + ) + # First indexer currently does not have a block associated with it in case + tm.assert_numpy_array_equal( + bm.blknos, np.array([0, 2, 2, 1], dtype="int64" if IS64 else "int32") + ) + assert len(bm.blocks) == 3 + + +def _as_array(mgr): + if mgr.ndim == 1: + return mgr.external_values() + return mgr.as_array().T + + +class TestIndexing: + # Nosetests-style data-driven tests. + # + # This test applies different indexing routines to block managers and + # compares the outcome to the result of same operations on np.ndarray. + # + # NOTE: sparse (SparseBlock with fill_value != np.nan) fail a lot of tests + # and are disabled. + + MANAGERS = [ + create_single_mgr("f8", N), + create_single_mgr("i8", N), + # 2-dim + create_mgr("a,b,c,d,e,f: f8", item_shape=(N,)), + create_mgr("a,b,c,d,e,f: i8", item_shape=(N,)), + create_mgr("a,b: f8; c,d: i8; e,f: string", item_shape=(N,)), + create_mgr("a,b: f8; c,d: i8; e,f: f8", item_shape=(N,)), + ] + + @pytest.mark.parametrize("mgr", MANAGERS) + def test_get_slice(self, mgr): + def assert_slice_ok(mgr, axis, slobj): + mat = _as_array(mgr) + + # we maybe using an ndarray to test slicing and + # might not be the full length of the axis + if isinstance(slobj, np.ndarray): + ax = mgr.axes[axis] + if len(ax) and len(slobj) and len(slobj) != len(ax): + slobj = np.concatenate( + [slobj, np.zeros(len(ax) - len(slobj), dtype=bool)] + ) + + if isinstance(slobj, slice): + sliced = mgr.get_slice(slobj, axis=axis) + elif ( + mgr.ndim == 1 + and axis == 0 + and isinstance(slobj, np.ndarray) + and slobj.dtype == bool + ): + sliced = mgr.get_rows_with_mask(slobj) + else: + # BlockManager doesn't support non-slice, SingleBlockManager + # doesn't support axis > 0 + raise TypeError(slobj) + + mat_slobj = (slice(None),) * axis + (slobj,) + tm.assert_numpy_array_equal( + mat[mat_slobj], _as_array(sliced), check_dtype=False + ) + tm.assert_index_equal(mgr.axes[axis][slobj], sliced.axes[axis]) + + assert mgr.ndim <= 2, mgr.ndim + for ax in range(mgr.ndim): + # slice + assert_slice_ok(mgr, ax, slice(None)) + assert_slice_ok(mgr, ax, slice(3)) + assert_slice_ok(mgr, ax, slice(100)) + assert_slice_ok(mgr, ax, slice(1, 4)) + assert_slice_ok(mgr, ax, slice(3, 0, -2)) + + if mgr.ndim < 2: + # 2D only support slice objects + + # boolean mask + assert_slice_ok(mgr, ax, np.ones(mgr.shape[ax], dtype=np.bool_)) + assert_slice_ok(mgr, ax, np.zeros(mgr.shape[ax], dtype=np.bool_)) + + if mgr.shape[ax] >= 3: + assert_slice_ok(mgr, ax, np.arange(mgr.shape[ax]) % 3 == 0) + assert_slice_ok( + mgr, ax, np.array([True, True, False], dtype=np.bool_) + ) + + @pytest.mark.parametrize("mgr", MANAGERS) + def test_take(self, mgr): + def assert_take_ok(mgr, axis, indexer): + mat = _as_array(mgr) + taken = mgr.take(indexer, axis) + tm.assert_numpy_array_equal( + np.take(mat, indexer, axis), _as_array(taken), check_dtype=False + ) + tm.assert_index_equal(mgr.axes[axis].take(indexer), taken.axes[axis]) + + for ax in range(mgr.ndim): + # take/fancy indexer + assert_take_ok(mgr, ax, indexer=np.array([], dtype=np.intp)) + assert_take_ok(mgr, ax, indexer=np.array([0, 0, 0], dtype=np.intp)) + assert_take_ok( + mgr, ax, indexer=np.array(list(range(mgr.shape[ax])), dtype=np.intp) + ) + + if mgr.shape[ax] >= 3: + assert_take_ok(mgr, ax, indexer=np.array([0, 1, 2], dtype=np.intp)) + assert_take_ok(mgr, ax, indexer=np.array([-1, -2, -3], dtype=np.intp)) + + @pytest.mark.parametrize("mgr", MANAGERS) + @pytest.mark.parametrize("fill_value", [None, np.nan, 100.0]) + def test_reindex_axis(self, fill_value, mgr): + def assert_reindex_axis_is_ok(mgr, axis, new_labels, fill_value): + mat = _as_array(mgr) + indexer = mgr.axes[axis].get_indexer_for(new_labels) + + reindexed = mgr.reindex_axis(new_labels, axis, fill_value=fill_value) + tm.assert_numpy_array_equal( + algos.take_nd(mat, indexer, axis, fill_value=fill_value), + _as_array(reindexed), + check_dtype=False, + ) + tm.assert_index_equal(reindexed.axes[axis], new_labels) + + for ax in range(mgr.ndim): + assert_reindex_axis_is_ok(mgr, ax, Index([]), fill_value) + assert_reindex_axis_is_ok(mgr, ax, mgr.axes[ax], fill_value) + assert_reindex_axis_is_ok(mgr, ax, mgr.axes[ax][[0, 0, 0]], fill_value) + assert_reindex_axis_is_ok(mgr, ax, Index(["foo", "bar", "baz"]), fill_value) + assert_reindex_axis_is_ok( + mgr, ax, Index(["foo", mgr.axes[ax][0], "baz"]), fill_value + ) + + if mgr.shape[ax] >= 3: + assert_reindex_axis_is_ok(mgr, ax, mgr.axes[ax][:-3], fill_value) + assert_reindex_axis_is_ok(mgr, ax, mgr.axes[ax][-3::-1], fill_value) + assert_reindex_axis_is_ok( + mgr, ax, mgr.axes[ax][[0, 1, 2, 0, 1, 2]], fill_value + ) + + @pytest.mark.parametrize("mgr", MANAGERS) + @pytest.mark.parametrize("fill_value", [None, np.nan, 100.0]) + def test_reindex_indexer(self, fill_value, mgr): + def assert_reindex_indexer_is_ok(mgr, axis, new_labels, indexer, fill_value): + mat = _as_array(mgr) + reindexed_mat = algos.take_nd(mat, indexer, axis, fill_value=fill_value) + reindexed = mgr.reindex_indexer( + new_labels, indexer, axis, fill_value=fill_value + ) + tm.assert_numpy_array_equal( + reindexed_mat, _as_array(reindexed), check_dtype=False + ) + tm.assert_index_equal(reindexed.axes[axis], new_labels) + + for ax in range(mgr.ndim): + assert_reindex_indexer_is_ok( + mgr, ax, Index([]), np.array([], dtype=np.intp), fill_value + ) + assert_reindex_indexer_is_ok( + mgr, ax, mgr.axes[ax], np.arange(mgr.shape[ax]), fill_value + ) + assert_reindex_indexer_is_ok( + mgr, + ax, + Index(["foo"] * mgr.shape[ax]), + np.arange(mgr.shape[ax]), + fill_value, + ) + assert_reindex_indexer_is_ok( + mgr, ax, mgr.axes[ax][::-1], np.arange(mgr.shape[ax]), fill_value + ) + assert_reindex_indexer_is_ok( + mgr, ax, mgr.axes[ax], np.arange(mgr.shape[ax])[::-1], fill_value + ) + assert_reindex_indexer_is_ok( + mgr, ax, Index(["foo", "bar", "baz"]), np.array([0, 0, 0]), fill_value + ) + assert_reindex_indexer_is_ok( + mgr, ax, Index(["foo", "bar", "baz"]), np.array([-1, 0, -1]), fill_value + ) + assert_reindex_indexer_is_ok( + mgr, + ax, + Index(["foo", mgr.axes[ax][0], "baz"]), + np.array([-1, -1, -1]), + fill_value, + ) + + if mgr.shape[ax] >= 3: + assert_reindex_indexer_is_ok( + mgr, + ax, + Index(["foo", "bar", "baz"]), + np.array([0, 1, 2]), + fill_value, + ) + + +class TestBlockPlacement: + @pytest.mark.parametrize( + "slc, expected", + [ + (slice(0, 4), 4), + (slice(0, 4, 2), 2), + (slice(0, 3, 2), 2), + (slice(0, 1, 2), 1), + (slice(1, 0, -1), 1), + ], + ) + def test_slice_len(self, slc, expected): + assert len(BlockPlacement(slc)) == expected + + @pytest.mark.parametrize("slc", [slice(1, 1, 0), slice(1, 2, 0)]) + def test_zero_step_raises(self, slc): + msg = "slice step cannot be zero" + with pytest.raises(ValueError, match=msg): + BlockPlacement(slc) + + def test_slice_canonize_negative_stop(self): + # GH#37524 negative stop is OK with negative step and positive start + slc = slice(3, -1, -2) + + bp = BlockPlacement(slc) + assert bp.indexer == slice(3, None, -2) + + @pytest.mark.parametrize( + "slc", + [ + slice(None, None), + slice(10, None), + slice(None, None, -1), + slice(None, 10, -1), + # These are "unbounded" because negative index will + # change depending on container shape. + slice(-1, None), + slice(None, -1), + slice(-1, -1), + slice(-1, None, -1), + slice(None, -1, -1), + slice(-1, -1, -1), + ], + ) + def test_unbounded_slice_raises(self, slc): + msg = "unbounded slice" + with pytest.raises(ValueError, match=msg): + BlockPlacement(slc) + + @pytest.mark.parametrize( + "slc", + [ + slice(0, 0), + slice(100, 0), + slice(100, 100), + slice(100, 100, -1), + slice(0, 100, -1), + ], + ) + def test_not_slice_like_slices(self, slc): + assert not BlockPlacement(slc).is_slice_like + + @pytest.mark.parametrize( + "arr, slc", + [ + ([0], slice(0, 1, 1)), + ([100], slice(100, 101, 1)), + ([0, 1, 2], slice(0, 3, 1)), + ([0, 5, 10], slice(0, 15, 5)), + ([0, 100], slice(0, 200, 100)), + ([2, 1], slice(2, 0, -1)), + ], + ) + def test_array_to_slice_conversion(self, arr, slc): + assert BlockPlacement(arr).as_slice == slc + + @pytest.mark.parametrize( + "arr", + [ + [], + [-1], + [-1, -2, -3], + [-10], + [-1], + [-1, 0, 1, 2], + [-2, 0, 2, 4], + [1, 0, -1], + [1, 1, 1], + ], + ) + def test_not_slice_like_arrays(self, arr): + assert not BlockPlacement(arr).is_slice_like + + @pytest.mark.parametrize( + "slc, expected", + [(slice(0, 3), [0, 1, 2]), (slice(0, 0), []), (slice(3, 0), [])], + ) + def test_slice_iter(self, slc, expected): + assert list(BlockPlacement(slc)) == expected + + @pytest.mark.parametrize( + "slc, arr", + [ + (slice(0, 3), [0, 1, 2]), + (slice(0, 0), []), + (slice(3, 0), []), + (slice(3, 0, -1), [3, 2, 1]), + ], + ) + def test_slice_to_array_conversion(self, slc, arr): + tm.assert_numpy_array_equal( + BlockPlacement(slc).as_array, np.asarray(arr, dtype=np.intp) + ) + + def test_blockplacement_add(self): + bpl = BlockPlacement(slice(0, 5)) + assert bpl.add(1).as_slice == slice(1, 6, 1) + assert bpl.add(np.arange(5)).as_slice == slice(0, 10, 2) + assert list(bpl.add(np.arange(5, 0, -1))) == [5, 5, 5, 5, 5] + + @pytest.mark.parametrize( + "val, inc, expected", + [ + (slice(0, 0), 0, []), + (slice(1, 4), 0, [1, 2, 3]), + (slice(3, 0, -1), 0, [3, 2, 1]), + ([1, 2, 4], 0, [1, 2, 4]), + (slice(0, 0), 10, []), + (slice(1, 4), 10, [11, 12, 13]), + (slice(3, 0, -1), 10, [13, 12, 11]), + ([1, 2, 4], 10, [11, 12, 14]), + (slice(0, 0), -1, []), + (slice(1, 4), -1, [0, 1, 2]), + ([1, 2, 4], -1, [0, 1, 3]), + ], + ) + def test_blockplacement_add_int(self, val, inc, expected): + assert list(BlockPlacement(val).add(inc)) == expected + + @pytest.mark.parametrize("val", [slice(1, 4), [1, 2, 4]]) + def test_blockplacement_add_int_raises(self, val): + msg = "iadd causes length change" + with pytest.raises(ValueError, match=msg): + BlockPlacement(val).add(-10) + + +class TestCanHoldElement: + @pytest.fixture( + params=[ + lambda x: x, + lambda x: x.to_series(), + lambda x: x._data, + lambda x: list(x), + lambda x: x.astype(object), + lambda x: np.asarray(x), + lambda x: x[0], + lambda x: x[:0], + ] + ) + def element(self, request): + """ + Functions that take an Index and return an element that should have + blk._can_hold_element(element) for a Block with this index's dtype. + """ + return request.param + + def test_datetime_block_can_hold_element(self): + block = create_block("datetime", [0]) + + assert block._can_hold_element([]) + + # We will check that block._can_hold_element iff arr.__setitem__ works + arr = pd.array(block.values.ravel()) + + # coerce None + assert block._can_hold_element(None) + arr[0] = None + assert arr[0] is pd.NaT + + # coerce different types of datetime objects + vals = [np.datetime64("2010-10-10"), datetime(2010, 10, 10)] + for val in vals: + assert block._can_hold_element(val) + arr[0] = val + + val = date(2010, 10, 10) + assert not block._can_hold_element(val) + + msg = ( + "value should be a 'Timestamp', 'NaT', " + "or array of those. Got 'date' instead." + ) + with pytest.raises(TypeError, match=msg): + arr[0] = val + + @pytest.mark.parametrize("dtype", [np.int64, np.uint64, np.float64]) + def test_interval_can_hold_element_emptylist(self, dtype, element): + arr = np.array([1, 3, 4], dtype=dtype) + ii = IntervalIndex.from_breaks(arr) + blk = new_block(ii._data, BlockPlacement([1]), ndim=2) + + assert blk._can_hold_element([]) + # TODO: check this holds for all blocks + + @pytest.mark.parametrize("dtype", [np.int64, np.uint64, np.float64]) + def test_interval_can_hold_element(self, dtype, element): + arr = np.array([1, 3, 4, 9], dtype=dtype) + ii = IntervalIndex.from_breaks(arr) + blk = new_block(ii._data, BlockPlacement([1]), ndim=2) + + elem = element(ii) + self.check_series_setitem(elem, ii, True) + assert blk._can_hold_element(elem) + + # Careful: to get the expected Series-inplace behavior we need + # `elem` to not have the same length as `arr` + ii2 = IntervalIndex.from_breaks(arr[:-1], closed="neither") + elem = element(ii2) + with tm.assert_produces_warning(FutureWarning): + self.check_series_setitem(elem, ii, False) + assert not blk._can_hold_element(elem) + + ii3 = IntervalIndex.from_breaks([Timestamp(1), Timestamp(3), Timestamp(4)]) + elem = element(ii3) + with tm.assert_produces_warning(FutureWarning): + self.check_series_setitem(elem, ii, False) + assert not blk._can_hold_element(elem) + + ii4 = IntervalIndex.from_breaks([Timedelta(1), Timedelta(3), Timedelta(4)]) + elem = element(ii4) + with tm.assert_produces_warning(FutureWarning): + self.check_series_setitem(elem, ii, False) + assert not blk._can_hold_element(elem) + + def test_period_can_hold_element_emptylist(self): + pi = period_range("2016", periods=3, freq="Y") + blk = new_block(pi._data.reshape(1, 3), BlockPlacement([1]), ndim=2) + + assert blk._can_hold_element([]) + + def test_period_can_hold_element(self, element): + pi = period_range("2016", periods=3, freq="Y") + + elem = element(pi) + self.check_series_setitem(elem, pi, True) + + # Careful: to get the expected Series-inplace behavior we need + # `elem` to not have the same length as `arr` + pi2 = pi.asfreq("D")[:-1] + elem = element(pi2) + with tm.assert_produces_warning(FutureWarning): + self.check_series_setitem(elem, pi, False) + + dti = pi.to_timestamp("s")[:-1] + elem = element(dti) + with tm.assert_produces_warning(FutureWarning): + self.check_series_setitem(elem, pi, False) + + def check_can_hold_element(self, obj, elem, inplace: bool): + blk = obj._mgr.blocks[0] + if inplace: + assert blk._can_hold_element(elem) + else: + assert not blk._can_hold_element(elem) + + def check_series_setitem(self, elem, index: Index, inplace: bool): + arr = index._data.copy() + ser = Series(arr, copy=False) + + self.check_can_hold_element(ser, elem, inplace) + + if is_scalar(elem): + ser[0] = elem + else: + ser[: len(elem)] = elem + + if inplace: + assert ser.array is arr # i.e. setting was done inplace + else: + assert ser.dtype == object + + +class TestShouldStore: + def test_should_store_categorical(self): + cat = Categorical(["A", "B", "C"]) + df = DataFrame(cat) + blk = df._mgr.blocks[0] + + # matching dtype + assert blk.should_store(cat) + assert blk.should_store(cat[:-1]) + + # different dtype + assert not blk.should_store(cat.as_ordered()) + + # ndarray instead of Categorical + assert not blk.should_store(np.asarray(cat)) + + +def test_validate_ndim(): + values = np.array([1.0, 2.0]) + placement = BlockPlacement(slice(2)) + msg = r"Wrong number of dimensions. values.ndim != ndim \[1 != 2\]" + + with pytest.raises(ValueError, match=msg): + make_block(values, placement, ndim=2) + + +def test_block_shape(): + idx = Index([0, 1, 2, 3, 4]) + a = Series([1, 2, 3]).reindex(idx) + b = Series(Categorical([1, 2, 3])).reindex(idx) + + assert a._mgr.blocks[0].mgr_locs.indexer == b._mgr.blocks[0].mgr_locs.indexer + + +def test_make_block_no_pandas_array(block_maker): + # https://github.com/pandas-dev/pandas/pull/24866 + arr = pd.arrays.NumpyExtensionArray(np.array([1, 2])) + + # NumpyExtensionArray, no dtype + result = block_maker(arr, BlockPlacement(slice(len(arr))), ndim=arr.ndim) + assert result.dtype.kind in ["i", "u"] + + if block_maker is make_block: + # new_block requires caller to unwrap NumpyExtensionArray + assert result.is_extension is False + + # NumpyExtensionArray, NumpyEADtype + result = block_maker(arr, slice(len(arr)), dtype=arr.dtype, ndim=arr.ndim) + assert result.dtype.kind in ["i", "u"] + assert result.is_extension is False + + # new_block no longer taked dtype keyword + # ndarray, NumpyEADtype + result = block_maker( + arr.to_numpy(), slice(len(arr)), dtype=arr.dtype, ndim=arr.ndim + ) + assert result.dtype.kind in ["i", "u"] + assert result.is_extension is False diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/internals/test_managers.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/internals/test_managers.py new file mode 100644 index 0000000000000000000000000000000000000000..f40362c299717be5f2e8665e4547276c2af05fb0 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/internals/test_managers.py @@ -0,0 +1,103 @@ +""" +Testing interaction between the different managers (BlockManager, ArrayManager) +""" +import os +import subprocess +import sys + +import pytest + +from pandas.core.dtypes.missing import array_equivalent + +import pandas as pd +import pandas._testing as tm +from pandas.core.internals import ( + ArrayManager, + BlockManager, + SingleArrayManager, + SingleBlockManager, +) + + +def test_dataframe_creation(): + msg = "data_manager option is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + with pd.option_context("mode.data_manager", "block"): + df_block = pd.DataFrame( + {"a": [1, 2, 3], "b": [0.1, 0.2, 0.3], "c": [4, 5, 6]} + ) + assert isinstance(df_block._mgr, BlockManager) + + with tm.assert_produces_warning(FutureWarning, match=msg): + with pd.option_context("mode.data_manager", "array"): + df_array = pd.DataFrame( + {"a": [1, 2, 3], "b": [0.1, 0.2, 0.3], "c": [4, 5, 6]} + ) + assert isinstance(df_array._mgr, ArrayManager) + + # also ensure both are seen as equal + tm.assert_frame_equal(df_block, df_array) + + # conversion from one manager to the other + result = df_block._as_manager("block") + assert isinstance(result._mgr, BlockManager) + result = df_block._as_manager("array") + assert isinstance(result._mgr, ArrayManager) + tm.assert_frame_equal(result, df_block) + assert all( + array_equivalent(left, right) + for left, right in zip(result._mgr.arrays, df_array._mgr.arrays) + ) + + result = df_array._as_manager("array") + assert isinstance(result._mgr, ArrayManager) + result = df_array._as_manager("block") + assert isinstance(result._mgr, BlockManager) + tm.assert_frame_equal(result, df_array) + assert len(result._mgr.blocks) == 2 + + +def test_series_creation(): + msg = "data_manager option is deprecated" + with tm.assert_produces_warning(FutureWarning, match=msg): + with pd.option_context("mode.data_manager", "block"): + s_block = pd.Series([1, 2, 3], name="A", index=["a", "b", "c"]) + assert isinstance(s_block._mgr, SingleBlockManager) + + with tm.assert_produces_warning(FutureWarning, match=msg): + with pd.option_context("mode.data_manager", "array"): + s_array = pd.Series([1, 2, 3], name="A", index=["a", "b", "c"]) + assert isinstance(s_array._mgr, SingleArrayManager) + + # also ensure both are seen as equal + tm.assert_series_equal(s_block, s_array) + + # conversion from one manager to the other + result = s_block._as_manager("block") + assert isinstance(result._mgr, SingleBlockManager) + result = s_block._as_manager("array") + assert isinstance(result._mgr, SingleArrayManager) + tm.assert_series_equal(result, s_block) + + result = s_array._as_manager("array") + assert isinstance(result._mgr, SingleArrayManager) + result = s_array._as_manager("block") + assert isinstance(result._mgr, SingleBlockManager) + tm.assert_series_equal(result, s_array) + + +@pytest.mark.single_cpu +@pytest.mark.parametrize("manager", ["block", "array"]) +def test_array_manager_depr_env_var(manager): + # GH#55043 + test_env = os.environ.copy() + test_env["PANDAS_DATA_MANAGER"] = manager + response = subprocess.run( + [sys.executable, "-c", "import pandas"], + capture_output=True, + env=test_env, + check=True, + ) + msg = "FutureWarning: The env variable PANDAS_DATA_MANAGER is set" + stderr_msg = response.stderr.decode("utf-8") + assert msg in stderr_msg, stderr_msg diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/conftest.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/conftest.py new file mode 100644 index 0000000000000000000000000000000000000000..a5ddda9d66e7af4a418a65650f1f44ae35bec4a1 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/conftest.py @@ -0,0 +1,225 @@ +import shlex +import subprocess +import time +import uuid + +import pytest + +from pandas.compat import ( + is_ci_environment, + is_platform_arm, + is_platform_mac, + is_platform_windows, +) +import pandas.util._test_decorators as td + +import pandas.io.common as icom +from pandas.io.parsers import read_csv + + +@pytest.fixture +def compression_to_extension(): + return {value: key for key, value in icom.extension_to_compression.items()} + + +@pytest.fixture +def tips_file(datapath): + """Path to the tips dataset""" + return datapath("io", "data", "csv", "tips.csv") + + +@pytest.fixture +def jsonl_file(datapath): + """Path to a JSONL dataset""" + return datapath("io", "parser", "data", "items.jsonl") + + +@pytest.fixture +def salaries_table(datapath): + """DataFrame with the salaries dataset""" + return read_csv(datapath("io", "parser", "data", "salaries.csv"), sep="\t") + + +@pytest.fixture +def feather_file(datapath): + return datapath("io", "data", "feather", "feather-0_3_1.feather") + + +@pytest.fixture +def xml_file(datapath): + return datapath("io", "data", "xml", "books.xml") + + +@pytest.fixture +def s3_base(worker_id, monkeypatch): + """ + Fixture for mocking S3 interaction. + + Sets up moto server in separate process locally + Return url for motoserver/moto CI service + """ + pytest.importorskip("s3fs") + pytest.importorskip("boto3") + + # temporary workaround as moto fails for botocore >= 1.11 otherwise, + # see https://github.com/spulec/moto/issues/1924 & 1952 + monkeypatch.setenv("AWS_ACCESS_KEY_ID", "foobar_key") + monkeypatch.setenv("AWS_SECRET_ACCESS_KEY", "foobar_secret") + if is_ci_environment(): + if is_platform_arm() or is_platform_mac() or is_platform_windows(): + # NOT RUN on Windows/macOS, only Ubuntu + # - subprocess in CI can cause timeouts + # - GitHub Actions do not support + # container services for the above OSs + pytest.skip( + "S3 tests do not have a corresponding service on " + "Windows or macOS platforms" + ) + else: + # set in .github/workflows/unit-tests.yml + yield "http://localhost:5000" + else: + requests = pytest.importorskip("requests") + pytest.importorskip("moto") + pytest.importorskip("flask") # server mode needs flask too + + # Launching moto in server mode, i.e., as a separate process + # with an S3 endpoint on localhost + + worker_id = "5" if worker_id == "master" else worker_id.lstrip("gw") + endpoint_port = f"555{worker_id}" + endpoint_uri = f"http://127.0.0.1:{endpoint_port}/" + + # pipe to null to avoid logging in terminal + with subprocess.Popen( + shlex.split(f"moto_server s3 -p {endpoint_port}"), + stdout=subprocess.DEVNULL, + stderr=subprocess.DEVNULL, + ) as proc: + timeout = 5 + while timeout > 0: + try: + # OK to go once server is accepting connections + r = requests.get(endpoint_uri) + if r.ok: + break + except Exception: + pass + timeout -= 0.1 + time.sleep(0.1) + yield endpoint_uri + + proc.terminate() + + +@pytest.fixture +def s3so(s3_base): + return {"client_kwargs": {"endpoint_url": s3_base}} + + +@pytest.fixture +def s3_resource(s3_base): + import boto3 + + s3 = boto3.resource("s3", endpoint_url=s3_base) + return s3 + + +@pytest.fixture +def s3_public_bucket(s3_resource): + bucket = s3_resource.Bucket(f"pandas-test-{uuid.uuid4()}") + bucket.create() + yield bucket + bucket.objects.delete() + bucket.delete() + + +@pytest.fixture +def s3_public_bucket_with_data( + s3_public_bucket, tips_file, jsonl_file, feather_file, xml_file +): + """ + The following datasets + are loaded. + + - tips.csv + - tips.csv.gz + - tips.csv.bz2 + - items.jsonl + """ + test_s3_files = [ + ("tips#1.csv", tips_file), + ("tips.csv", tips_file), + ("tips.csv.gz", tips_file + ".gz"), + ("tips.csv.bz2", tips_file + ".bz2"), + ("items.jsonl", jsonl_file), + ("simple_dataset.feather", feather_file), + ("books.xml", xml_file), + ] + for s3_key, file_name in test_s3_files: + with open(file_name, "rb") as f: + s3_public_bucket.put_object(Key=s3_key, Body=f) + return s3_public_bucket + + +@pytest.fixture +def s3_private_bucket(s3_resource): + bucket = s3_resource.Bucket(f"cant_get_it-{uuid.uuid4()}") + bucket.create(ACL="private") + yield bucket + bucket.objects.delete() + bucket.delete() + + +@pytest.fixture +def s3_private_bucket_with_data( + s3_private_bucket, tips_file, jsonl_file, feather_file, xml_file +): + """ + The following datasets + are loaded. + + - tips.csv + - tips.csv.gz + - tips.csv.bz2 + - items.jsonl + """ + test_s3_files = [ + ("tips#1.csv", tips_file), + ("tips.csv", tips_file), + ("tips.csv.gz", tips_file + ".gz"), + ("tips.csv.bz2", tips_file + ".bz2"), + ("items.jsonl", jsonl_file), + ("simple_dataset.feather", feather_file), + ("books.xml", xml_file), + ] + for s3_key, file_name in test_s3_files: + with open(file_name, "rb") as f: + s3_private_bucket.put_object(Key=s3_key, Body=f) + return s3_private_bucket + + +_compression_formats_params = [ + (".no_compress", None), + ("", None), + (".gz", "gzip"), + (".GZ", "gzip"), + (".bz2", "bz2"), + (".BZ2", "bz2"), + (".zip", "zip"), + (".ZIP", "zip"), + (".xz", "xz"), + (".XZ", "xz"), + pytest.param((".zst", "zstd"), marks=td.skip_if_no("zstandard")), + pytest.param((".ZST", "zstd"), marks=td.skip_if_no("zstandard")), +] + + +@pytest.fixture(params=_compression_formats_params[1:]) +def compression_format(request): + return request.param + + +@pytest.fixture(params=_compression_formats_params) +def compression_ext(request): + return request.param[0] diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/excel/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/excel/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/excel/test_odf.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/excel/test_odf.py new file mode 100644 index 0000000000000000000000000000000000000000..b5bb9b27258d86cda6e44aeae17a4cdba4157a43 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/excel/test_odf.py @@ -0,0 +1,77 @@ +import functools + +import numpy as np +import pytest + +from pandas.compat import is_platform_windows + +import pandas as pd +import pandas._testing as tm + +pytest.importorskip("odf") + +if is_platform_windows(): + pytestmark = pytest.mark.single_cpu + + +@pytest.fixture(autouse=True) +def cd_and_set_engine(monkeypatch, datapath): + func = functools.partial(pd.read_excel, engine="odf") + monkeypatch.setattr(pd, "read_excel", func) + monkeypatch.chdir(datapath("io", "data", "excel")) + + +def test_read_invalid_types_raises(): + # the invalid_value_type.ods required manually editing + # of the included content.xml file + with pytest.raises(ValueError, match="Unrecognized type awesome_new_type"): + pd.read_excel("invalid_value_type.ods") + + +def test_read_writer_table(): + # Also test reading tables from an text OpenDocument file + # (.odt) + index = pd.Index(["Row 1", "Row 2", "Row 3"], name="Header") + expected = pd.DataFrame( + [[1, np.nan, 7], [2, np.nan, 8], [3, np.nan, 9]], + index=index, + columns=["Column 1", "Unnamed: 2", "Column 3"], + ) + + result = pd.read_excel("writertable.odt", sheet_name="Table1", index_col=0) + + tm.assert_frame_equal(result, expected) + + +def test_read_newlines_between_xml_elements_table(): + # GH#45598 + expected = pd.DataFrame( + [[1.0, 4.0, 7], [np.nan, np.nan, 8], [3.0, 6.0, 9]], + columns=["Column 1", "Column 2", "Column 3"], + ) + + result = pd.read_excel("test_newlines.ods") + + tm.assert_frame_equal(result, expected) + + +def test_read_unempty_cells(): + expected = pd.DataFrame( + [1, np.nan, 3, np.nan, 5], + columns=["Column 1"], + ) + + result = pd.read_excel("test_unempty_cells.ods") + + tm.assert_frame_equal(result, expected) + + +def test_read_cell_annotation(): + expected = pd.DataFrame( + ["test", np.nan, "test 3"], + columns=["Column 1"], + ) + + result = pd.read_excel("test_cell_annotation.ods") + + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/excel/test_odswriter.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/excel/test_odswriter.py new file mode 100644 index 0000000000000000000000000000000000000000..1c728ad801bc139c1ca1cd2e902884a5a2c91ffc --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/excel/test_odswriter.py @@ -0,0 +1,106 @@ +from datetime import ( + date, + datetime, +) +import re + +import pytest + +from pandas.compat import is_platform_windows + +import pandas as pd +import pandas._testing as tm + +from pandas.io.excel import ExcelWriter + +odf = pytest.importorskip("odf") + +if is_platform_windows(): + pytestmark = pytest.mark.single_cpu + + +@pytest.fixture +def ext(): + return ".ods" + + +def test_write_append_mode_raises(ext): + msg = "Append mode is not supported with odf!" + + with tm.ensure_clean(ext) as f: + with pytest.raises(ValueError, match=msg): + ExcelWriter(f, engine="odf", mode="a") + + +@pytest.mark.parametrize("engine_kwargs", [None, {"kwarg": 1}]) +def test_engine_kwargs(ext, engine_kwargs): + # GH 42286 + # GH 43445 + # test for error: OpenDocumentSpreadsheet does not accept any arguments + with tm.ensure_clean(ext) as f: + if engine_kwargs is not None: + error = re.escape( + "OpenDocumentSpreadsheet() got an unexpected keyword argument 'kwarg'" + ) + with pytest.raises( + TypeError, + match=error, + ): + ExcelWriter(f, engine="odf", engine_kwargs=engine_kwargs) + else: + with ExcelWriter(f, engine="odf", engine_kwargs=engine_kwargs) as _: + pass + + +def test_book_and_sheets_consistent(ext): + # GH#45687 - Ensure sheets is updated if user modifies book + with tm.ensure_clean(ext) as f: + with ExcelWriter(f) as writer: + assert writer.sheets == {} + table = odf.table.Table(name="test_name") + writer.book.spreadsheet.addElement(table) + assert writer.sheets == {"test_name": table} + + +@pytest.mark.parametrize( + ["value", "cell_value_type", "cell_value_attribute", "cell_value"], + argvalues=[ + (True, "boolean", "boolean-value", "true"), + ("test string", "string", "string-value", "test string"), + (1, "float", "value", "1"), + (1.5, "float", "value", "1.5"), + ( + datetime(2010, 10, 10, 10, 10, 10), + "date", + "date-value", + "2010-10-10T10:10:10", + ), + (date(2010, 10, 10), "date", "date-value", "2010-10-10"), + ], +) +def test_cell_value_type(ext, value, cell_value_type, cell_value_attribute, cell_value): + # GH#54994 ODS: cell attributes should follow specification + # http://docs.oasis-open.org/office/v1.2/os/OpenDocument-v1.2-os-part1.html#refTable13 + from odf.namespaces import OFFICENS + from odf.table import ( + TableCell, + TableRow, + ) + + table_cell_name = TableCell().qname + + with tm.ensure_clean(ext) as f: + pd.DataFrame([[value]]).to_excel(f, header=False, index=False) + + with pd.ExcelFile(f) as wb: + sheet = wb._reader.get_sheet_by_index(0) + sheet_rows = sheet.getElementsByType(TableRow) + sheet_cells = [ + x + for x in sheet_rows[0].childNodes + if hasattr(x, "qname") and x.qname == table_cell_name + ] + + cell = sheet_cells[0] + assert cell.attributes.get((OFFICENS, "value-type")) == cell_value_type + assert cell.attributes.get((OFFICENS, cell_value_attribute)) == cell_value diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/excel/test_openpyxl.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/excel/test_openpyxl.py new file mode 100644 index 0000000000000000000000000000000000000000..e53b5830ec6a4b315165f4896aed27bdaadfbda6 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/excel/test_openpyxl.py @@ -0,0 +1,432 @@ +import contextlib +from pathlib import Path +import re + +import numpy as np +import pytest + +from pandas.compat import is_platform_windows + +import pandas as pd +from pandas import DataFrame +import pandas._testing as tm + +from pandas.io.excel import ( + ExcelWriter, + _OpenpyxlWriter, +) +from pandas.io.excel._openpyxl import OpenpyxlReader + +openpyxl = pytest.importorskip("openpyxl") + +if is_platform_windows(): + pytestmark = pytest.mark.single_cpu + + +@pytest.fixture +def ext(): + return ".xlsx" + + +def test_to_excel_styleconverter(): + from openpyxl import styles + + hstyle = { + "font": {"color": "00FF0000", "bold": True}, + "borders": {"top": "thin", "right": "thin", "bottom": "thin", "left": "thin"}, + "alignment": {"horizontal": "center", "vertical": "top"}, + "fill": {"patternType": "solid", "fgColor": {"rgb": "006666FF", "tint": 0.3}}, + "number_format": {"format_code": "0.00"}, + "protection": {"locked": True, "hidden": False}, + } + + font_color = styles.Color("00FF0000") + font = styles.Font(bold=True, color=font_color) + side = styles.Side(style=styles.borders.BORDER_THIN) + border = styles.Border(top=side, right=side, bottom=side, left=side) + alignment = styles.Alignment(horizontal="center", vertical="top") + fill_color = styles.Color(rgb="006666FF", tint=0.3) + fill = styles.PatternFill(patternType="solid", fgColor=fill_color) + + number_format = "0.00" + + protection = styles.Protection(locked=True, hidden=False) + + kw = _OpenpyxlWriter._convert_to_style_kwargs(hstyle) + assert kw["font"] == font + assert kw["border"] == border + assert kw["alignment"] == alignment + assert kw["fill"] == fill + assert kw["number_format"] == number_format + assert kw["protection"] == protection + + +def test_write_cells_merge_styled(ext): + from pandas.io.formats.excel import ExcelCell + + sheet_name = "merge_styled" + + sty_b1 = {"font": {"color": "00FF0000"}} + sty_a2 = {"font": {"color": "0000FF00"}} + + initial_cells = [ + ExcelCell(col=1, row=0, val=42, style=sty_b1), + ExcelCell(col=0, row=1, val=99, style=sty_a2), + ] + + sty_merged = {"font": {"color": "000000FF", "bold": True}} + sty_kwargs = _OpenpyxlWriter._convert_to_style_kwargs(sty_merged) + openpyxl_sty_merged = sty_kwargs["font"] + merge_cells = [ + ExcelCell( + col=0, row=0, val="pandas", mergestart=1, mergeend=1, style=sty_merged + ) + ] + + with tm.ensure_clean(ext) as path: + with _OpenpyxlWriter(path) as writer: + writer._write_cells(initial_cells, sheet_name=sheet_name) + writer._write_cells(merge_cells, sheet_name=sheet_name) + + wks = writer.sheets[sheet_name] + xcell_b1 = wks["B1"] + xcell_a2 = wks["A2"] + assert xcell_b1.font == openpyxl_sty_merged + assert xcell_a2.font == openpyxl_sty_merged + + +@pytest.mark.parametrize("iso_dates", [True, False]) +def test_engine_kwargs_write(ext, iso_dates): + # GH 42286 GH 43445 + engine_kwargs = {"iso_dates": iso_dates} + with tm.ensure_clean(ext) as f: + with ExcelWriter(f, engine="openpyxl", engine_kwargs=engine_kwargs) as writer: + assert writer.book.iso_dates == iso_dates + # ExcelWriter won't allow us to close without writing something + DataFrame().to_excel(writer) + + +def test_engine_kwargs_append_invalid(ext): + # GH 43445 + # test whether an invalid engine kwargs actually raises + with tm.ensure_clean(ext) as f: + DataFrame(["hello", "world"]).to_excel(f) + with pytest.raises( + TypeError, + match=re.escape( + "load_workbook() got an unexpected keyword argument 'apple_banana'" + ), + ): + with ExcelWriter( + f, engine="openpyxl", mode="a", engine_kwargs={"apple_banana": "fruit"} + ) as writer: + # ExcelWriter needs us to write something to close properly + DataFrame(["good"]).to_excel(writer, sheet_name="Sheet2") + + +@pytest.mark.parametrize("data_only, expected", [(True, 0), (False, "=1+1")]) +def test_engine_kwargs_append_data_only(ext, data_only, expected): + # GH 43445 + # tests whether the data_only engine_kwarg actually works well for + # openpyxl's load_workbook + with tm.ensure_clean(ext) as f: + DataFrame(["=1+1"]).to_excel(f) + with ExcelWriter( + f, engine="openpyxl", mode="a", engine_kwargs={"data_only": data_only} + ) as writer: + assert writer.sheets["Sheet1"]["B2"].value == expected + # ExcelWriter needs us to writer something to close properly? + DataFrame().to_excel(writer, sheet_name="Sheet2") + + # ensure that data_only also works for reading + # and that formulas/values roundtrip + assert ( + pd.read_excel( + f, + sheet_name="Sheet1", + engine="openpyxl", + engine_kwargs={"data_only": data_only}, + ).iloc[0, 1] + == expected + ) + + +@pytest.mark.parametrize("kwarg_name", ["read_only", "data_only"]) +@pytest.mark.parametrize("kwarg_value", [True, False]) +def test_engine_kwargs_append_reader(datapath, ext, kwarg_name, kwarg_value): + # GH 55027 + # test that `read_only` and `data_only` can be passed to + # `openpyxl.reader.excel.load_workbook` via `engine_kwargs` + filename = datapath("io", "data", "excel", "test1" + ext) + with contextlib.closing( + OpenpyxlReader(filename, engine_kwargs={kwarg_name: kwarg_value}) + ) as reader: + assert getattr(reader.book, kwarg_name) == kwarg_value + + +@pytest.mark.parametrize( + "mode,expected", [("w", ["baz"]), ("a", ["foo", "bar", "baz"])] +) +def test_write_append_mode(ext, mode, expected): + df = DataFrame([1], columns=["baz"]) + + with tm.ensure_clean(ext) as f: + wb = openpyxl.Workbook() + wb.worksheets[0].title = "foo" + wb.worksheets[0]["A1"].value = "foo" + wb.create_sheet("bar") + wb.worksheets[1]["A1"].value = "bar" + wb.save(f) + + with ExcelWriter(f, engine="openpyxl", mode=mode) as writer: + df.to_excel(writer, sheet_name="baz", index=False) + + with contextlib.closing(openpyxl.load_workbook(f)) as wb2: + result = [sheet.title for sheet in wb2.worksheets] + assert result == expected + + for index, cell_value in enumerate(expected): + assert wb2.worksheets[index]["A1"].value == cell_value + + +@pytest.mark.parametrize( + "if_sheet_exists,num_sheets,expected", + [ + ("new", 2, ["apple", "banana"]), + ("replace", 1, ["pear"]), + ("overlay", 1, ["pear", "banana"]), + ], +) +def test_if_sheet_exists_append_modes(ext, if_sheet_exists, num_sheets, expected): + # GH 40230 + df1 = DataFrame({"fruit": ["apple", "banana"]}) + df2 = DataFrame({"fruit": ["pear"]}) + + with tm.ensure_clean(ext) as f: + df1.to_excel(f, engine="openpyxl", sheet_name="foo", index=False) + with ExcelWriter( + f, engine="openpyxl", mode="a", if_sheet_exists=if_sheet_exists + ) as writer: + df2.to_excel(writer, sheet_name="foo", index=False) + + with contextlib.closing(openpyxl.load_workbook(f)) as wb: + assert len(wb.sheetnames) == num_sheets + assert wb.sheetnames[0] == "foo" + result = pd.read_excel(wb, "foo", engine="openpyxl") + assert list(result["fruit"]) == expected + if len(wb.sheetnames) == 2: + result = pd.read_excel(wb, wb.sheetnames[1], engine="openpyxl") + tm.assert_frame_equal(result, df2) + + +@pytest.mark.parametrize( + "startrow, startcol, greeting, goodbye", + [ + (0, 0, ["poop", "world"], ["goodbye", "people"]), + (0, 1, ["hello", "world"], ["poop", "people"]), + (1, 0, ["hello", "poop"], ["goodbye", "people"]), + (1, 1, ["hello", "world"], ["goodbye", "poop"]), + ], +) +def test_append_overlay_startrow_startcol(ext, startrow, startcol, greeting, goodbye): + df1 = DataFrame({"greeting": ["hello", "world"], "goodbye": ["goodbye", "people"]}) + df2 = DataFrame(["poop"]) + + with tm.ensure_clean(ext) as f: + df1.to_excel(f, engine="openpyxl", sheet_name="poo", index=False) + with ExcelWriter( + f, engine="openpyxl", mode="a", if_sheet_exists="overlay" + ) as writer: + # use startrow+1 because we don't have a header + df2.to_excel( + writer, + index=False, + header=False, + startrow=startrow + 1, + startcol=startcol, + sheet_name="poo", + ) + + result = pd.read_excel(f, sheet_name="poo", engine="openpyxl") + expected = DataFrame({"greeting": greeting, "goodbye": goodbye}) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "if_sheet_exists,msg", + [ + ( + "invalid", + "'invalid' is not valid for if_sheet_exists. Valid options " + "are 'error', 'new', 'replace' and 'overlay'.", + ), + ( + "error", + "Sheet 'foo' already exists and if_sheet_exists is set to 'error'.", + ), + ( + None, + "Sheet 'foo' already exists and if_sheet_exists is set to 'error'.", + ), + ], +) +def test_if_sheet_exists_raises(ext, if_sheet_exists, msg): + # GH 40230 + df = DataFrame({"fruit": ["pear"]}) + with tm.ensure_clean(ext) as f: + with pytest.raises(ValueError, match=re.escape(msg)): + df.to_excel(f, sheet_name="foo", engine="openpyxl") + with ExcelWriter( + f, engine="openpyxl", mode="a", if_sheet_exists=if_sheet_exists + ) as writer: + df.to_excel(writer, sheet_name="foo") + + +def test_to_excel_with_openpyxl_engine(ext): + # GH 29854 + with tm.ensure_clean(ext) as filename: + df1 = DataFrame({"A": np.linspace(1, 10, 10)}) + df2 = DataFrame({"B": np.linspace(1, 20, 10)}) + df = pd.concat([df1, df2], axis=1) + styled = df.style.map( + lambda val: f"color: {'red' if val < 0 else 'black'}" + ).highlight_max() + + styled.to_excel(filename, engine="openpyxl") + + +@pytest.mark.parametrize("read_only", [True, False]) +def test_read_workbook(datapath, ext, read_only): + # GH 39528 + filename = datapath("io", "data", "excel", "test1" + ext) + with contextlib.closing( + openpyxl.load_workbook(filename, read_only=read_only) + ) as wb: + result = pd.read_excel(wb, engine="openpyxl") + expected = pd.read_excel(filename) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "header, expected_data", + [ + ( + 0, + { + "Title": [np.nan, "A", 1, 2, 3], + "Unnamed: 1": [np.nan, "B", 4, 5, 6], + "Unnamed: 2": [np.nan, "C", 7, 8, 9], + }, + ), + (2, {"A": [1, 2, 3], "B": [4, 5, 6], "C": [7, 8, 9]}), + ], +) +@pytest.mark.parametrize( + "filename", ["dimension_missing", "dimension_small", "dimension_large"] +) +# When read_only is None, use read_excel instead of a workbook +@pytest.mark.parametrize("read_only", [True, False, None]) +def test_read_with_bad_dimension( + datapath, ext, header, expected_data, filename, read_only +): + # GH 38956, 39001 - no/incorrect dimension information + path = datapath("io", "data", "excel", f"{filename}{ext}") + if read_only is None: + result = pd.read_excel(path, header=header) + else: + with contextlib.closing( + openpyxl.load_workbook(path, read_only=read_only) + ) as wb: + result = pd.read_excel(wb, engine="openpyxl", header=header) + expected = DataFrame(expected_data) + tm.assert_frame_equal(result, expected) + + +def test_append_mode_file(ext): + # GH 39576 + df = DataFrame() + + with tm.ensure_clean(ext) as f: + df.to_excel(f, engine="openpyxl") + + with ExcelWriter( + f, mode="a", engine="openpyxl", if_sheet_exists="new" + ) as writer: + df.to_excel(writer) + + # make sure that zip files are not concatenated by making sure that + # "docProps/app.xml" only occurs twice in the file + data = Path(f).read_bytes() + first = data.find(b"docProps/app.xml") + second = data.find(b"docProps/app.xml", first + 1) + third = data.find(b"docProps/app.xml", second + 1) + assert second != -1 and third == -1 + + +# When read_only is None, use read_excel instead of a workbook +@pytest.mark.parametrize("read_only", [True, False, None]) +def test_read_with_empty_trailing_rows(datapath, ext, read_only): + # GH 39181 + path = datapath("io", "data", "excel", f"empty_trailing_rows{ext}") + if read_only is None: + result = pd.read_excel(path) + else: + with contextlib.closing( + openpyxl.load_workbook(path, read_only=read_only) + ) as wb: + result = pd.read_excel(wb, engine="openpyxl") + expected = DataFrame( + { + "Title": [np.nan, "A", 1, 2, 3], + "Unnamed: 1": [np.nan, "B", 4, 5, 6], + "Unnamed: 2": [np.nan, "C", 7, 8, 9], + } + ) + tm.assert_frame_equal(result, expected) + + +# When read_only is None, use read_excel instead of a workbook +@pytest.mark.parametrize("read_only", [True, False, None]) +def test_read_empty_with_blank_row(datapath, ext, read_only): + # GH 39547 - empty excel file with a row that has no data + path = datapath("io", "data", "excel", f"empty_with_blank_row{ext}") + if read_only is None: + result = pd.read_excel(path) + else: + with contextlib.closing( + openpyxl.load_workbook(path, read_only=read_only) + ) as wb: + result = pd.read_excel(wb, engine="openpyxl") + expected = DataFrame() + tm.assert_frame_equal(result, expected) + + +def test_book_and_sheets_consistent(ext): + # GH#45687 - Ensure sheets is updated if user modifies book + with tm.ensure_clean(ext) as f: + with ExcelWriter(f, engine="openpyxl") as writer: + assert writer.sheets == {} + sheet = writer.book.create_sheet("test_name", 0) + assert writer.sheets == {"test_name": sheet} + + +def test_ints_spelled_with_decimals(datapath, ext): + # GH 46988 - openpyxl returns this sheet with floats + path = datapath("io", "data", "excel", f"ints_spelled_with_decimals{ext}") + result = pd.read_excel(path) + expected = DataFrame(range(2, 12), columns=[1]) + tm.assert_frame_equal(result, expected) + + +def test_read_multiindex_header_no_index_names(datapath, ext): + # GH#47487 + path = datapath("io", "data", "excel", f"multiindex_no_index_names{ext}") + result = pd.read_excel(path, index_col=[0, 1, 2], header=[0, 1, 2]) + expected = DataFrame( + [[np.nan, "x", "x", "x"], ["x", np.nan, np.nan, np.nan]], + columns=pd.MultiIndex.from_tuples( + [("X", "Y", "A1"), ("X", "Y", "A2"), ("XX", "YY", "B1"), ("XX", "YY", "B2")] + ), + index=pd.MultiIndex.from_tuples([("A", "AA", "AAA"), ("A", "BB", "BBB")]), + ) + tm.assert_frame_equal(result, expected) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/excel/test_readers.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/excel/test_readers.py new file mode 100644 index 0000000000000000000000000000000000000000..c62144adbaecbdd445a4171896e9ca2905f13205 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/excel/test_readers.py @@ -0,0 +1,1735 @@ +from __future__ import annotations + +from datetime import ( + datetime, + time, +) +from functools import partial +from io import BytesIO +import os +from pathlib import Path +import platform +import re +from urllib.error import URLError +from zipfile import BadZipFile + +import numpy as np +import pytest + +from pandas.compat import is_platform_windows +import pandas.util._test_decorators as td + +import pandas as pd +from pandas import ( + DataFrame, + Index, + MultiIndex, + Series, + read_csv, +) +import pandas._testing as tm + +if is_platform_windows(): + pytestmark = pytest.mark.single_cpu + +read_ext_params = [".xls", ".xlsx", ".xlsm", ".xlsb", ".ods"] +engine_params = [ + # Add any engines to test here + # When defusedxml is installed it triggers deprecation warnings for + # xlrd and openpyxl, so catch those here + pytest.param( + "xlrd", + marks=[ + td.skip_if_no("xlrd"), + ], + ), + pytest.param( + "openpyxl", + marks=[ + td.skip_if_no("openpyxl"), + ], + ), + pytest.param( + None, + marks=[ + td.skip_if_no("xlrd"), + ], + ), + pytest.param("pyxlsb", marks=td.skip_if_no("pyxlsb")), + pytest.param("odf", marks=td.skip_if_no("odf")), + pytest.param("calamine", marks=td.skip_if_no("python_calamine")), +] + + +def _is_valid_engine_ext_pair(engine, read_ext: str) -> bool: + """ + Filter out invalid (engine, ext) pairs instead of skipping, as that + produces 500+ pytest.skips. + """ + engine = engine.values[0] + if engine == "openpyxl" and read_ext == ".xls": + return False + if engine == "odf" and read_ext != ".ods": + return False + if read_ext == ".ods" and engine not in {"odf", "calamine"}: + return False + if engine == "pyxlsb" and read_ext != ".xlsb": + return False + if read_ext == ".xlsb" and engine not in {"pyxlsb", "calamine"}: + return False + if engine == "xlrd" and read_ext != ".xls": + return False + return True + + +def _transfer_marks(engine, read_ext): + """ + engine gives us a pytest.param object with some marks, read_ext is just + a string. We need to generate a new pytest.param inheriting the marks. + """ + values = engine.values + (read_ext,) + new_param = pytest.param(values, marks=engine.marks) + return new_param + + +@pytest.fixture( + params=[ + _transfer_marks(eng, ext) + for eng in engine_params + for ext in read_ext_params + if _is_valid_engine_ext_pair(eng, ext) + ], + ids=str, +) +def engine_and_read_ext(request): + """ + Fixture for Excel reader engine and read_ext, only including valid pairs. + """ + return request.param + + +@pytest.fixture +def engine(engine_and_read_ext): + engine, read_ext = engine_and_read_ext + return engine + + +@pytest.fixture +def read_ext(engine_and_read_ext): + engine, read_ext = engine_and_read_ext + return read_ext + + +@pytest.fixture +def df_ref(datapath): + """ + Obtain the reference data from read_csv with the Python engine. + """ + filepath = datapath("io", "data", "csv", "test1.csv") + df_ref = read_csv(filepath, index_col=0, parse_dates=True, engine="python") + return df_ref + + +def get_exp_unit(read_ext: str, engine: str | None) -> str: + return "ns" + + +def adjust_expected(expected: DataFrame, read_ext: str, engine: str) -> None: + expected.index.name = None + unit = get_exp_unit(read_ext, engine) + # error: "Index" has no attribute "as_unit" + expected.index = expected.index.as_unit(unit) # type: ignore[attr-defined] + + +def xfail_datetimes_with_pyxlsb(engine, request): + if engine == "pyxlsb": + request.applymarker( + pytest.mark.xfail( + reason="Sheets containing datetimes not supported by pyxlsb" + ) + ) + + +class TestReaders: + @pytest.fixture(autouse=True) + def cd_and_set_engine(self, engine, datapath, monkeypatch): + """ + Change directory and set engine for read_excel calls. + """ + func = partial(pd.read_excel, engine=engine) + monkeypatch.chdir(datapath("io", "data", "excel")) + monkeypatch.setattr(pd, "read_excel", func) + + def test_engine_used(self, read_ext, engine, monkeypatch): + # GH 38884 + def parser(self, *args, **kwargs): + return self.engine + + monkeypatch.setattr(pd.ExcelFile, "parse", parser) + + expected_defaults = { + "xlsx": "openpyxl", + "xlsm": "openpyxl", + "xlsb": "pyxlsb", + "xls": "xlrd", + "ods": "odf", + } + + with open("test1" + read_ext, "rb") as f: + result = pd.read_excel(f) + + if engine is not None: + expected = engine + else: + expected = expected_defaults[read_ext[1:]] + assert result == expected + + def test_engine_kwargs(self, read_ext, engine): + # GH#52214 + expected_defaults = { + "xlsx": {"foo": "abcd"}, + "xlsm": {"foo": 123}, + "xlsb": {"foo": "True"}, + "xls": {"foo": True}, + "ods": {"foo": "abcd"}, + } + + if engine in {"xlrd", "pyxlsb"}: + msg = re.escape(r"open_workbook() got an unexpected keyword argument 'foo'") + elif engine == "odf": + msg = re.escape(r"load() got an unexpected keyword argument 'foo'") + else: + msg = re.escape(r"load_workbook() got an unexpected keyword argument 'foo'") + + if engine is not None: + with pytest.raises(TypeError, match=msg): + pd.read_excel( + "test1" + read_ext, + sheet_name="Sheet1", + index_col=0, + engine_kwargs=expected_defaults[read_ext[1:]], + ) + + def test_usecols_int(self, read_ext): + # usecols as int + msg = "Passing an integer for `usecols`" + with pytest.raises(ValueError, match=msg): + pd.read_excel( + "test1" + read_ext, sheet_name="Sheet1", index_col=0, usecols=3 + ) + + # usecols as int + with pytest.raises(ValueError, match=msg): + pd.read_excel( + "test1" + read_ext, + sheet_name="Sheet2", + skiprows=[1], + index_col=0, + usecols=3, + ) + + def test_usecols_list(self, request, engine, read_ext, df_ref): + xfail_datetimes_with_pyxlsb(engine, request) + + expected = df_ref[["B", "C"]] + adjust_expected(expected, read_ext, engine) + + df1 = pd.read_excel( + "test1" + read_ext, sheet_name="Sheet1", index_col=0, usecols=[0, 2, 3] + ) + df2 = pd.read_excel( + "test1" + read_ext, + sheet_name="Sheet2", + skiprows=[1], + index_col=0, + usecols=[0, 2, 3], + ) + + # TODO add index to xls file) + tm.assert_frame_equal(df1, expected) + tm.assert_frame_equal(df2, expected) + + def test_usecols_str(self, request, engine, read_ext, df_ref): + xfail_datetimes_with_pyxlsb(engine, request) + + expected = df_ref[["A", "B", "C"]] + adjust_expected(expected, read_ext, engine) + + df2 = pd.read_excel( + "test1" + read_ext, sheet_name="Sheet1", index_col=0, usecols="A:D" + ) + df3 = pd.read_excel( + "test1" + read_ext, + sheet_name="Sheet2", + skiprows=[1], + index_col=0, + usecols="A:D", + ) + + # TODO add index to xls, read xls ignores index name ? + tm.assert_frame_equal(df2, expected) + tm.assert_frame_equal(df3, expected) + + expected = df_ref[["B", "C"]] + adjust_expected(expected, read_ext, engine) + + df2 = pd.read_excel( + "test1" + read_ext, sheet_name="Sheet1", index_col=0, usecols="A,C,D" + ) + df3 = pd.read_excel( + "test1" + read_ext, + sheet_name="Sheet2", + skiprows=[1], + index_col=0, + usecols="A,C,D", + ) + # TODO add index to xls file + tm.assert_frame_equal(df2, expected) + tm.assert_frame_equal(df3, expected) + + df2 = pd.read_excel( + "test1" + read_ext, sheet_name="Sheet1", index_col=0, usecols="A,C:D" + ) + df3 = pd.read_excel( + "test1" + read_ext, + sheet_name="Sheet2", + skiprows=[1], + index_col=0, + usecols="A,C:D", + ) + tm.assert_frame_equal(df2, expected) + tm.assert_frame_equal(df3, expected) + + @pytest.mark.parametrize( + "usecols", [[0, 1, 3], [0, 3, 1], [1, 0, 3], [1, 3, 0], [3, 0, 1], [3, 1, 0]] + ) + def test_usecols_diff_positional_int_columns_order( + self, request, engine, read_ext, usecols, df_ref + ): + xfail_datetimes_with_pyxlsb(engine, request) + + expected = df_ref[["A", "C"]] + adjust_expected(expected, read_ext, engine) + + result = pd.read_excel( + "test1" + read_ext, sheet_name="Sheet1", index_col=0, usecols=usecols + ) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("usecols", [["B", "D"], ["D", "B"]]) + def test_usecols_diff_positional_str_columns_order(self, read_ext, usecols, df_ref): + expected = df_ref[["B", "D"]] + expected.index = range(len(expected)) + + result = pd.read_excel("test1" + read_ext, sheet_name="Sheet1", usecols=usecols) + tm.assert_frame_equal(result, expected) + + def test_read_excel_without_slicing(self, request, engine, read_ext, df_ref): + xfail_datetimes_with_pyxlsb(engine, request) + + expected = df_ref + adjust_expected(expected, read_ext, engine) + + result = pd.read_excel("test1" + read_ext, sheet_name="Sheet1", index_col=0) + tm.assert_frame_equal(result, expected) + + def test_usecols_excel_range_str(self, request, engine, read_ext, df_ref): + xfail_datetimes_with_pyxlsb(engine, request) + + expected = df_ref[["C", "D"]] + adjust_expected(expected, read_ext, engine) + + result = pd.read_excel( + "test1" + read_ext, sheet_name="Sheet1", index_col=0, usecols="A,D:E" + ) + tm.assert_frame_equal(result, expected) + + def test_usecols_excel_range_str_invalid(self, read_ext): + msg = "Invalid column name: E1" + + with pytest.raises(ValueError, match=msg): + pd.read_excel("test1" + read_ext, sheet_name="Sheet1", usecols="D:E1") + + def test_index_col_label_error(self, read_ext): + msg = "list indices must be integers.*, not str" + + with pytest.raises(TypeError, match=msg): + pd.read_excel( + "test1" + read_ext, + sheet_name="Sheet1", + index_col=["A"], + usecols=["A", "C"], + ) + + def test_index_col_str(self, read_ext): + # see gh-52716 + result = pd.read_excel("test1" + read_ext, sheet_name="Sheet3", index_col="A") + expected = DataFrame( + columns=["B", "C", "D", "E", "F"], index=Index([], name="A") + ) + tm.assert_frame_equal(result, expected) + + def test_index_col_empty(self, read_ext): + # see gh-9208 + result = pd.read_excel( + "test1" + read_ext, sheet_name="Sheet3", index_col=["A", "B", "C"] + ) + expected = DataFrame( + columns=["D", "E", "F"], + index=MultiIndex(levels=[[]] * 3, codes=[[]] * 3, names=["A", "B", "C"]), + ) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("index_col", [None, 2]) + def test_index_col_with_unnamed(self, read_ext, index_col): + # see gh-18792 + result = pd.read_excel( + "test1" + read_ext, sheet_name="Sheet4", index_col=index_col + ) + expected = DataFrame( + [["i1", "a", "x"], ["i2", "b", "y"]], columns=["Unnamed: 0", "col1", "col2"] + ) + if index_col: + expected = expected.set_index(expected.columns[index_col]) + + tm.assert_frame_equal(result, expected) + + def test_usecols_pass_non_existent_column(self, read_ext): + msg = ( + "Usecols do not match columns, " + "columns expected but not found: " + r"\['E'\]" + ) + + with pytest.raises(ValueError, match=msg): + pd.read_excel("test1" + read_ext, usecols=["E"]) + + def test_usecols_wrong_type(self, read_ext): + msg = ( + "'usecols' must either be list-like of " + "all strings, all unicode, all integers or a callable." + ) + + with pytest.raises(ValueError, match=msg): + pd.read_excel("test1" + read_ext, usecols=["E1", 0]) + + def test_excel_stop_iterator(self, read_ext): + parsed = pd.read_excel("test2" + read_ext, sheet_name="Sheet1") + expected = DataFrame([["aaaa", "bbbbb"]], columns=["Test", "Test1"]) + tm.assert_frame_equal(parsed, expected) + + def test_excel_cell_error_na(self, request, engine, read_ext): + xfail_datetimes_with_pyxlsb(engine, request) + + # https://github.com/tafia/calamine/issues/355 + if engine == "calamine" and read_ext == ".ods": + request.applymarker( + pytest.mark.xfail(reason="Calamine can't extract error from ods files") + ) + + parsed = pd.read_excel("test3" + read_ext, sheet_name="Sheet1") + expected = DataFrame([[np.nan]], columns=["Test"]) + tm.assert_frame_equal(parsed, expected) + + def test_excel_table(self, request, engine, read_ext, df_ref): + xfail_datetimes_with_pyxlsb(engine, request) + + expected = df_ref + adjust_expected(expected, read_ext, engine) + + df1 = pd.read_excel("test1" + read_ext, sheet_name="Sheet1", index_col=0) + df2 = pd.read_excel( + "test1" + read_ext, sheet_name="Sheet2", skiprows=[1], index_col=0 + ) + # TODO add index to file + tm.assert_frame_equal(df1, expected) + tm.assert_frame_equal(df2, expected) + + df3 = pd.read_excel( + "test1" + read_ext, sheet_name="Sheet1", index_col=0, skipfooter=1 + ) + tm.assert_frame_equal(df3, df1.iloc[:-1]) + + def test_reader_special_dtypes(self, request, engine, read_ext): + xfail_datetimes_with_pyxlsb(engine, request) + + unit = get_exp_unit(read_ext, engine) + expected = DataFrame.from_dict( + { + "IntCol": [1, 2, -3, 4, 0], + "FloatCol": [1.25, 2.25, 1.83, 1.92, 0.0000000005], + "BoolCol": [True, False, True, True, False], + "StrCol": [1, 2, 3, 4, 5], + "Str2Col": ["a", 3, "c", "d", "e"], + "DateCol": Index( + [ + datetime(2013, 10, 30), + datetime(2013, 10, 31), + datetime(1905, 1, 1), + datetime(2013, 12, 14), + datetime(2015, 3, 14), + ], + dtype=f"M8[{unit}]", + ), + }, + ) + basename = "test_types" + + # should read in correctly and infer types + actual = pd.read_excel(basename + read_ext, sheet_name="Sheet1") + tm.assert_frame_equal(actual, expected) + + # if not coercing number, then int comes in as float + float_expected = expected.copy() + float_expected.loc[float_expected.index[1], "Str2Col"] = 3.0 + actual = pd.read_excel(basename + read_ext, sheet_name="Sheet1") + tm.assert_frame_equal(actual, float_expected) + + # check setting Index (assuming xls and xlsx are the same here) + for icol, name in enumerate(expected.columns): + actual = pd.read_excel( + basename + read_ext, sheet_name="Sheet1", index_col=icol + ) + exp = expected.set_index(name) + tm.assert_frame_equal(actual, exp) + + expected["StrCol"] = expected["StrCol"].apply(str) + actual = pd.read_excel( + basename + read_ext, sheet_name="Sheet1", converters={"StrCol": str} + ) + tm.assert_frame_equal(actual, expected) + + # GH8212 - support for converters and missing values + def test_reader_converters(self, read_ext): + basename = "test_converters" + + expected = DataFrame.from_dict( + { + "IntCol": [1, 2, -3, -1000, 0], + "FloatCol": [12.5, np.nan, 18.3, 19.2, 0.000000005], + "BoolCol": ["Found", "Found", "Found", "Not found", "Found"], + "StrCol": ["1", np.nan, "3", "4", "5"], + } + ) + + converters = { + "IntCol": lambda x: int(x) if x != "" else -1000, + "FloatCol": lambda x: 10 * x if x else np.nan, + 2: lambda x: "Found" if x != "" else "Not found", + 3: lambda x: str(x) if x else "", + } + + # should read in correctly and set types of single cells (not array + # dtypes) + actual = pd.read_excel( + basename + read_ext, sheet_name="Sheet1", converters=converters + ) + tm.assert_frame_equal(actual, expected) + + def test_reader_dtype(self, read_ext): + # GH 8212 + basename = "testdtype" + actual = pd.read_excel(basename + read_ext) + + expected = DataFrame( + { + "a": [1, 2, 3, 4], + "b": [2.5, 3.5, 4.5, 5.5], + "c": [1, 2, 3, 4], + "d": [1.0, 2.0, np.nan, 4.0], + } + ) + + tm.assert_frame_equal(actual, expected) + + actual = pd.read_excel( + basename + read_ext, dtype={"a": "float64", "b": "float32", "c": str} + ) + + expected["a"] = expected["a"].astype("float64") + expected["b"] = expected["b"].astype("float32") + expected["c"] = Series(["001", "002", "003", "004"], dtype="str") + tm.assert_frame_equal(actual, expected) + + msg = "Unable to convert column d to type int64" + with pytest.raises(ValueError, match=msg): + pd.read_excel(basename + read_ext, dtype={"d": "int64"}) + + @pytest.mark.parametrize( + "dtype,expected", + [ + ( + None, + DataFrame( + { + "a": [1, 2, 3, 4], + "b": [2.5, 3.5, 4.5, 5.5], + "c": [1, 2, 3, 4], + "d": [1.0, 2.0, np.nan, 4.0], + } + ), + ), + ( + {"a": "float64", "b": "float32", "c": str, "d": str}, + DataFrame( + { + "a": Series([1, 2, 3, 4], dtype="float64"), + "b": Series([2.5, 3.5, 4.5, 5.5], dtype="float32"), + "c": Series(["001", "002", "003", "004"], dtype="str"), + "d": Series(["1", "2", np.nan, "4"], dtype="str"), + }, + ), + ), + ], + ) + def test_reader_dtype_str(self, read_ext, dtype, expected): + # see gh-20377 + basename = "testdtype" + + actual = pd.read_excel(basename + read_ext, dtype=dtype) + tm.assert_frame_equal(actual, expected) + + def test_dtype_backend(self, read_ext, dtype_backend, engine): + # GH#36712 + if read_ext in (".xlsb", ".xls"): + pytest.skip(f"No engine for filetype: '{read_ext}'") + + df = DataFrame( + { + "a": Series([1, 3], dtype="Int64"), + "b": Series([2.5, 4.5], dtype="Float64"), + "c": Series([True, False], dtype="boolean"), + "d": Series(["a", "b"], dtype="string"), + "e": Series([pd.NA, 6], dtype="Int64"), + "f": Series([pd.NA, 7.5], dtype="Float64"), + "g": Series([pd.NA, True], dtype="boolean"), + "h": Series([pd.NA, "a"], dtype="string"), + "i": Series([pd.Timestamp("2019-12-31")] * 2), + "j": Series([pd.NA, pd.NA], dtype="Int64"), + } + ) + with tm.ensure_clean(read_ext) as file_path: + df.to_excel(file_path, sheet_name="test", index=False) + result = pd.read_excel( + file_path, sheet_name="test", dtype_backend=dtype_backend + ) + if dtype_backend == "pyarrow": + import pyarrow as pa + + from pandas.arrays import ArrowExtensionArray + + expected = DataFrame( + { + col: ArrowExtensionArray(pa.array(df[col], from_pandas=True)) + for col in df.columns + } + ) + # pyarrow by default infers timestamp resolution as us, not ns + expected["i"] = ArrowExtensionArray( + expected["i"].array._pa_array.cast(pa.timestamp(unit="us")) + ) + # pyarrow supports a null type, so don't have to default to Int64 + expected["j"] = ArrowExtensionArray(pa.array([None, None])) + else: + expected = df + unit = get_exp_unit(read_ext, engine) + expected["i"] = expected["i"].astype(f"M8[{unit}]") + + tm.assert_frame_equal(result, expected) + + def test_dtype_backend_and_dtype(self, read_ext): + # GH#36712 + if read_ext in (".xlsb", ".xls"): + pytest.skip(f"No engine for filetype: '{read_ext}'") + + df = DataFrame({"a": [np.nan, 1.0], "b": [2.5, np.nan]}) + with tm.ensure_clean(read_ext) as file_path: + df.to_excel(file_path, sheet_name="test", index=False) + result = pd.read_excel( + file_path, + sheet_name="test", + dtype_backend="numpy_nullable", + dtype="float64", + ) + tm.assert_frame_equal(result, df) + + def test_dtype_backend_string(self, read_ext, string_storage): + # GH#36712 + if read_ext in (".xlsb", ".xls"): + pytest.skip(f"No engine for filetype: '{read_ext}'") + + with pd.option_context("mode.string_storage", string_storage): + df = DataFrame( + { + "a": np.array(["a", "b"], dtype=np.object_), + "b": np.array(["x", pd.NA], dtype=np.object_), + } + ) + + with tm.ensure_clean(read_ext) as file_path: + df.to_excel(file_path, sheet_name="test", index=False) + result = pd.read_excel( + file_path, sheet_name="test", dtype_backend="numpy_nullable" + ) + + expected = DataFrame( + { + "a": Series(["a", "b"], dtype=pd.StringDtype(string_storage)), + "b": Series(["x", None], dtype=pd.StringDtype(string_storage)), + } + ) + # the storage of the str columns' Index is also affected by the + # string_storage setting -> ignore that for checking the result + tm.assert_frame_equal(result, expected, check_column_type=False) + + @pytest.mark.parametrize("dtypes, exp_value", [({}, 1), ({"a.1": "int64"}, 1)]) + def test_dtype_mangle_dup_cols(self, read_ext, dtypes, exp_value): + # GH#35211 + basename = "df_mangle_dup_col_dtypes" + dtype_dict = {"a": object, **dtypes} + dtype_dict_copy = dtype_dict.copy() + # GH#42462 + result = pd.read_excel(basename + read_ext, dtype=dtype_dict) + expected = DataFrame( + { + "a": Series([1], dtype=object), + "a.1": Series([exp_value], dtype=object if not dtypes else None), + } + ) + assert dtype_dict == dtype_dict_copy, "dtype dict changed" + tm.assert_frame_equal(result, expected) + + def test_reader_spaces(self, read_ext): + # see gh-32207 + basename = "test_spaces" + + actual = pd.read_excel(basename + read_ext) + expected = DataFrame( + { + "testcol": [ + "this is great", + "4 spaces", + "1 trailing ", + " 1 leading", + "2 spaces multiple times", + ] + } + ) + tm.assert_frame_equal(actual, expected) + + # gh-36122, gh-35802 + @pytest.mark.parametrize( + "basename,expected", + [ + ("gh-35802", DataFrame({"COLUMN": ["Test (1)"]})), + ("gh-36122", DataFrame(columns=["got 2nd sa"])), + ], + ) + def test_read_excel_ods_nested_xml(self, engine, read_ext, basename, expected): + # see gh-35802 + if engine != "odf": + pytest.skip(f"Skipped for engine: {engine}") + + actual = pd.read_excel(basename + read_ext) + tm.assert_frame_equal(actual, expected) + + def test_reading_all_sheets(self, read_ext): + # Test reading all sheet names by setting sheet_name to None, + # Ensure a dict is returned. + # See PR #9450 + basename = "test_multisheet" + dfs = pd.read_excel(basename + read_ext, sheet_name=None) + # ensure this is not alphabetical to test order preservation + expected_keys = ["Charlie", "Alpha", "Beta"] + tm.assert_contains_all(expected_keys, dfs.keys()) + # Issue 9930 + # Ensure sheet order is preserved + assert expected_keys == list(dfs.keys()) + + def test_reading_multiple_specific_sheets(self, read_ext): + # Test reading specific sheet names by specifying a mixed list + # of integers and strings, and confirm that duplicated sheet + # references (positions/names) are removed properly. + # Ensure a dict is returned + # See PR #9450 + basename = "test_multisheet" + # Explicitly request duplicates. Only the set should be returned. + expected_keys = [2, "Charlie", "Charlie"] + dfs = pd.read_excel(basename + read_ext, sheet_name=expected_keys) + expected_keys = list(set(expected_keys)) + tm.assert_contains_all(expected_keys, dfs.keys()) + assert len(expected_keys) == len(dfs.keys()) + + def test_reading_all_sheets_with_blank(self, read_ext): + # Test reading all sheet names by setting sheet_name to None, + # In the case where some sheets are blank. + # Issue #11711 + basename = "blank_with_header" + dfs = pd.read_excel(basename + read_ext, sheet_name=None) + expected_keys = ["Sheet1", "Sheet2", "Sheet3"] + tm.assert_contains_all(expected_keys, dfs.keys()) + + # GH6403 + def test_read_excel_blank(self, read_ext): + actual = pd.read_excel("blank" + read_ext, sheet_name="Sheet1") + tm.assert_frame_equal(actual, DataFrame()) + + def test_read_excel_blank_with_header(self, read_ext): + expected = DataFrame(columns=["col_1", "col_2"]) + actual = pd.read_excel("blank_with_header" + read_ext, sheet_name="Sheet1") + tm.assert_frame_equal(actual, expected) + + def test_exception_message_includes_sheet_name(self, read_ext): + # GH 48706 + with pytest.raises(ValueError, match=r" \(sheet: Sheet1\)$"): + pd.read_excel("blank_with_header" + read_ext, header=[1], sheet_name=None) + with pytest.raises(ZeroDivisionError, match=r" \(sheet: Sheet1\)$"): + pd.read_excel("test1" + read_ext, usecols=lambda x: 1 / 0, sheet_name=None) + + @pytest.mark.filterwarnings("ignore:Cell A4 is marked:UserWarning:openpyxl") + def test_date_conversion_overflow(self, request, engine, read_ext): + # GH 10001 : pandas.ExcelFile ignore parse_dates=False + xfail_datetimes_with_pyxlsb(engine, request) + + expected = DataFrame( + [ + [pd.Timestamp("2016-03-12"), "Marc Johnson"], + [pd.Timestamp("2016-03-16"), "Jack Black"], + [1e20, "Timothy Brown"], + ], + columns=["DateColWithBigInt", "StringCol"], + ) + + if engine == "openpyxl": + request.applymarker( + pytest.mark.xfail(reason="Maybe not supported by openpyxl") + ) + + if engine is None and read_ext in (".xlsx", ".xlsm"): + # GH 35029 + request.applymarker( + pytest.mark.xfail(reason="Defaults to openpyxl, maybe not supported") + ) + + result = pd.read_excel("testdateoverflow" + read_ext) + tm.assert_frame_equal(result, expected) + + def test_sheet_name(self, request, read_ext, engine, df_ref): + xfail_datetimes_with_pyxlsb(engine, request) + + filename = "test1" + sheet_name = "Sheet1" + + expected = df_ref + adjust_expected(expected, read_ext, engine) + + df1 = pd.read_excel( + filename + read_ext, sheet_name=sheet_name, index_col=0 + ) # doc + df2 = pd.read_excel(filename + read_ext, index_col=0, sheet_name=sheet_name) + + tm.assert_frame_equal(df1, expected) + tm.assert_frame_equal(df2, expected) + + def test_excel_read_buffer(self, read_ext): + pth = "test1" + read_ext + expected = pd.read_excel(pth, sheet_name="Sheet1", index_col=0) + with open(pth, "rb") as f: + actual = pd.read_excel(f, sheet_name="Sheet1", index_col=0) + tm.assert_frame_equal(expected, actual) + + def test_bad_engine_raises(self): + bad_engine = "foo" + with pytest.raises(ValueError, match="Unknown engine: foo"): + pd.read_excel("", engine=bad_engine) + + @pytest.mark.parametrize( + "sheet_name", + [3, [0, 3], [3, 0], "Sheet4", ["Sheet1", "Sheet4"], ["Sheet4", "Sheet1"]], + ) + def test_bad_sheetname_raises(self, read_ext, sheet_name): + # GH 39250 + msg = "Worksheet index 3 is invalid|Worksheet named 'Sheet4' not found" + with pytest.raises(ValueError, match=msg): + pd.read_excel("blank" + read_ext, sheet_name=sheet_name) + + def test_missing_file_raises(self, read_ext): + bad_file = f"foo{read_ext}" + # CI tests with other languages, translates to "No such file or directory" + match = "|".join( + [ + "(No such file or directory", + "没有那个文件或目录", + "File o directory non esistente)", + ] + ) + with pytest.raises(FileNotFoundError, match=match): + pd.read_excel(bad_file) + + def test_corrupt_bytes_raises(self, engine): + bad_stream = b"foo" + if engine is None: + error = ValueError + msg = ( + "Excel file format cannot be determined, you must " + "specify an engine manually." + ) + elif engine == "xlrd": + from xlrd import XLRDError + + error = XLRDError + msg = ( + "Unsupported format, or corrupt file: Expected BOF " + "record; found b'foo'" + ) + elif engine == "calamine": + from python_calamine import CalamineError + + error = CalamineError + msg = "Cannot detect file format" + else: + error = BadZipFile + msg = "File is not a zip file" + with pytest.raises(error, match=msg): + pd.read_excel(BytesIO(bad_stream)) + + @pytest.mark.network + @pytest.mark.single_cpu + def test_read_from_http_url(self, httpserver, read_ext): + with open("test1" + read_ext, "rb") as f: + httpserver.serve_content(content=f.read()) + url_table = pd.read_excel(httpserver.url) + local_table = pd.read_excel("test1" + read_ext) + tm.assert_frame_equal(url_table, local_table) + + @td.skip_if_not_us_locale + @pytest.mark.single_cpu + def test_read_from_s3_url(self, read_ext, s3_public_bucket, s3so): + # Bucket created in tests/io/conftest.py + with open("test1" + read_ext, "rb") as f: + s3_public_bucket.put_object(Key="test1" + read_ext, Body=f) + + url = f"s3://{s3_public_bucket.name}/test1" + read_ext + + url_table = pd.read_excel(url, storage_options=s3so) + local_table = pd.read_excel("test1" + read_ext) + tm.assert_frame_equal(url_table, local_table) + + @pytest.mark.single_cpu + def test_read_from_s3_object(self, read_ext, s3_public_bucket, s3so): + # GH 38788 + # Bucket created in tests/io/conftest.py + with open("test1" + read_ext, "rb") as f: + s3_public_bucket.put_object(Key="test1" + read_ext, Body=f) + + import s3fs + + s3 = s3fs.S3FileSystem(**s3so) + + with s3.open(f"s3://{s3_public_bucket.name}/test1" + read_ext) as f: + url_table = pd.read_excel(f) + + local_table = pd.read_excel("test1" + read_ext) + tm.assert_frame_equal(url_table, local_table) + + @pytest.mark.slow + def test_read_from_file_url(self, read_ext, datapath): + # FILE + localtable = os.path.join(datapath("io", "data", "excel"), "test1" + read_ext) + local_table = pd.read_excel(localtable) + + try: + url_table = pd.read_excel("file://localhost/" + localtable) + except URLError: + # fails on some systems + platform_info = " ".join(platform.uname()).strip() + pytest.skip(f"failing on {platform_info}") + + tm.assert_frame_equal(url_table, local_table) + + def test_read_from_pathlib_path(self, read_ext): + # GH12655 + str_path = "test1" + read_ext + expected = pd.read_excel(str_path, sheet_name="Sheet1", index_col=0) + + path_obj = Path("test1" + read_ext) + actual = pd.read_excel(path_obj, sheet_name="Sheet1", index_col=0) + + tm.assert_frame_equal(expected, actual) + + @td.skip_if_no("py.path") + def test_read_from_py_localpath(self, read_ext): + # GH12655 + from py.path import local as LocalPath + + str_path = os.path.join("test1" + read_ext) + expected = pd.read_excel(str_path, sheet_name="Sheet1", index_col=0) + + path_obj = LocalPath().join("test1" + read_ext) + actual = pd.read_excel(path_obj, sheet_name="Sheet1", index_col=0) + + tm.assert_frame_equal(expected, actual) + + def test_close_from_py_localpath(self, read_ext): + # GH31467 + str_path = os.path.join("test1" + read_ext) + with open(str_path, "rb") as f: + x = pd.read_excel(f, sheet_name="Sheet1", index_col=0) + del x + # should not throw an exception because the passed file was closed + f.read() + + def test_reader_seconds(self, request, engine, read_ext): + xfail_datetimes_with_pyxlsb(engine, request) + + # GH 55045 + if engine == "calamine" and read_ext == ".ods": + request.applymarker( + pytest.mark.xfail( + reason="ODS file contains bad datetime (seconds as text)" + ) + ) + + # Test reading times with and without milliseconds. GH5945. + expected = DataFrame.from_dict( + { + "Time": [ + time(1, 2, 3), + time(2, 45, 56, 100000), + time(4, 29, 49, 200000), + time(6, 13, 42, 300000), + time(7, 57, 35, 400000), + time(9, 41, 28, 500000), + time(11, 25, 21, 600000), + time(13, 9, 14, 700000), + time(14, 53, 7, 800000), + time(16, 37, 0, 900000), + time(18, 20, 54), + ] + } + ) + + actual = pd.read_excel("times_1900" + read_ext, sheet_name="Sheet1") + tm.assert_frame_equal(actual, expected) + + actual = pd.read_excel("times_1904" + read_ext, sheet_name="Sheet1") + tm.assert_frame_equal(actual, expected) + + def test_read_excel_multiindex(self, request, engine, read_ext): + # see gh-4679 + xfail_datetimes_with_pyxlsb(engine, request) + + unit = get_exp_unit(read_ext, engine) + + mi = MultiIndex.from_product([["foo", "bar"], ["a", "b"]]) + mi_file = "testmultiindex" + read_ext + + # "mi_column" sheet + expected = DataFrame( + [ + [1, 2.5, pd.Timestamp("2015-01-01"), True], + [2, 3.5, pd.Timestamp("2015-01-02"), False], + [3, 4.5, pd.Timestamp("2015-01-03"), False], + [4, 5.5, pd.Timestamp("2015-01-04"), True], + ], + columns=mi, + ) + expected[mi[2]] = expected[mi[2]].astype(f"M8[{unit}]") + + actual = pd.read_excel( + mi_file, sheet_name="mi_column", header=[0, 1], index_col=0 + ) + tm.assert_frame_equal(actual, expected) + + # "mi_index" sheet + expected.index = mi + expected.columns = ["a", "b", "c", "d"] + + actual = pd.read_excel(mi_file, sheet_name="mi_index", index_col=[0, 1]) + tm.assert_frame_equal(actual, expected) + + # "both" sheet + expected.columns = mi + + actual = pd.read_excel( + mi_file, sheet_name="both", index_col=[0, 1], header=[0, 1] + ) + tm.assert_frame_equal(actual, expected) + + # "mi_index_name" sheet + expected.columns = ["a", "b", "c", "d"] + expected.index = mi.set_names(["ilvl1", "ilvl2"]) + + actual = pd.read_excel(mi_file, sheet_name="mi_index_name", index_col=[0, 1]) + tm.assert_frame_equal(actual, expected) + + # "mi_column_name" sheet + expected.index = list(range(4)) + expected.columns = mi.set_names(["c1", "c2"]) + actual = pd.read_excel( + mi_file, sheet_name="mi_column_name", header=[0, 1], index_col=0 + ) + tm.assert_frame_equal(actual, expected) + + # see gh-11317 + # "name_with_int" sheet + expected.columns = mi.set_levels([1, 2], level=1).set_names(["c1", "c2"]) + + actual = pd.read_excel( + mi_file, sheet_name="name_with_int", index_col=0, header=[0, 1] + ) + tm.assert_frame_equal(actual, expected) + + # "both_name" sheet + expected.columns = mi.set_names(["c1", "c2"]) + expected.index = mi.set_names(["ilvl1", "ilvl2"]) + + actual = pd.read_excel( + mi_file, sheet_name="both_name", index_col=[0, 1], header=[0, 1] + ) + tm.assert_frame_equal(actual, expected) + + # "both_skiprows" sheet + actual = pd.read_excel( + mi_file, + sheet_name="both_name_skiprows", + index_col=[0, 1], + header=[0, 1], + skiprows=2, + ) + tm.assert_frame_equal(actual, expected) + + @pytest.mark.parametrize( + "sheet_name,idx_lvl2", + [ + ("both_name_blank_after_mi_name", [np.nan, "b", "a", "b"]), + ("both_name_multiple_blanks", [np.nan] * 4), + ], + ) + def test_read_excel_multiindex_blank_after_name( + self, request, engine, read_ext, sheet_name, idx_lvl2 + ): + # GH34673 + xfail_datetimes_with_pyxlsb(engine, request) + + mi_file = "testmultiindex" + read_ext + mi = MultiIndex.from_product([["foo", "bar"], ["a", "b"]], names=["c1", "c2"]) + + unit = get_exp_unit(read_ext, engine) + + expected = DataFrame( + [ + [1, 2.5, pd.Timestamp("2015-01-01"), True], + [2, 3.5, pd.Timestamp("2015-01-02"), False], + [3, 4.5, pd.Timestamp("2015-01-03"), False], + [4, 5.5, pd.Timestamp("2015-01-04"), True], + ], + columns=mi, + index=MultiIndex.from_arrays( + (["foo", "foo", "bar", "bar"], idx_lvl2), + names=["ilvl1", "ilvl2"], + ), + ) + expected[mi[2]] = expected[mi[2]].astype(f"M8[{unit}]") + result = pd.read_excel( + mi_file, + sheet_name=sheet_name, + index_col=[0, 1], + header=[0, 1], + ) + tm.assert_frame_equal(result, expected) + + def test_read_excel_multiindex_header_only(self, read_ext): + # see gh-11733. + # + # Don't try to parse a header name if there isn't one. + mi_file = "testmultiindex" + read_ext + result = pd.read_excel(mi_file, sheet_name="index_col_none", header=[0, 1]) + + exp_columns = MultiIndex.from_product([("A", "B"), ("key", "val")]) + expected = DataFrame([[1, 2, 3, 4]] * 2, columns=exp_columns) + tm.assert_frame_equal(result, expected) + + def test_excel_old_index_format(self, read_ext): + # see gh-4679 + filename = "test_index_name_pre17" + read_ext + + # We detect headers to determine if index names exist, so + # that "index" name in the "names" version of the data will + # now be interpreted as rows that include null data. + data = np.array( + [ + [np.nan, np.nan, np.nan, np.nan, np.nan], + ["R0C0", "R0C1", "R0C2", "R0C3", "R0C4"], + ["R1C0", "R1C1", "R1C2", "R1C3", "R1C4"], + ["R2C0", "R2C1", "R2C2", "R2C3", "R2C4"], + ["R3C0", "R3C1", "R3C2", "R3C3", "R3C4"], + ["R4C0", "R4C1", "R4C2", "R4C3", "R4C4"], + ], + dtype=object, + ) + columns = ["C_l0_g0", "C_l0_g1", "C_l0_g2", "C_l0_g3", "C_l0_g4"] + mi = MultiIndex( + levels=[ + ["R0", "R_l0_g0", "R_l0_g1", "R_l0_g2", "R_l0_g3", "R_l0_g4"], + ["R1", "R_l1_g0", "R_l1_g1", "R_l1_g2", "R_l1_g3", "R_l1_g4"], + ], + codes=[[0, 1, 2, 3, 4, 5], [0, 1, 2, 3, 4, 5]], + names=[None, None], + ) + si = Index( + ["R0", "R_l0_g0", "R_l0_g1", "R_l0_g2", "R_l0_g3", "R_l0_g4"], name=None + ) + + expected = DataFrame(data, index=si, columns=columns) + + actual = pd.read_excel(filename, sheet_name="single_names", index_col=0) + tm.assert_frame_equal(actual, expected) + + expected.index = mi + + actual = pd.read_excel(filename, sheet_name="multi_names", index_col=[0, 1]) + tm.assert_frame_equal(actual, expected) + + # The analogous versions of the "names" version data + # where there are explicitly no names for the indices. + data = np.array( + [ + ["R0C0", "R0C1", "R0C2", "R0C3", "R0C4"], + ["R1C0", "R1C1", "R1C2", "R1C3", "R1C4"], + ["R2C0", "R2C1", "R2C2", "R2C3", "R2C4"], + ["R3C0", "R3C1", "R3C2", "R3C3", "R3C4"], + ["R4C0", "R4C1", "R4C2", "R4C3", "R4C4"], + ] + ) + columns = ["C_l0_g0", "C_l0_g1", "C_l0_g2", "C_l0_g3", "C_l0_g4"] + mi = MultiIndex( + levels=[ + ["R_l0_g0", "R_l0_g1", "R_l0_g2", "R_l0_g3", "R_l0_g4"], + ["R_l1_g0", "R_l1_g1", "R_l1_g2", "R_l1_g3", "R_l1_g4"], + ], + codes=[[0, 1, 2, 3, 4], [0, 1, 2, 3, 4]], + names=[None, None], + ) + si = Index(["R_l0_g0", "R_l0_g1", "R_l0_g2", "R_l0_g3", "R_l0_g4"], name=None) + + expected = DataFrame(data, index=si, columns=columns) + + actual = pd.read_excel(filename, sheet_name="single_no_names", index_col=0) + tm.assert_frame_equal(actual, expected) + + expected.index = mi + + actual = pd.read_excel(filename, sheet_name="multi_no_names", index_col=[0, 1]) + tm.assert_frame_equal(actual, expected) + + def test_read_excel_bool_header_arg(self, read_ext): + # GH 6114 + msg = "Passing a bool to header is invalid" + for arg in [True, False]: + with pytest.raises(TypeError, match=msg): + pd.read_excel("test1" + read_ext, header=arg) + + def test_read_excel_skiprows(self, request, engine, read_ext): + # GH 4903 + xfail_datetimes_with_pyxlsb(engine, request) + + unit = get_exp_unit(read_ext, engine) + + actual = pd.read_excel( + "testskiprows" + read_ext, sheet_name="skiprows_list", skiprows=[0, 2] + ) + expected = DataFrame( + [ + [1, 2.5, pd.Timestamp("2015-01-01"), True], + [2, 3.5, pd.Timestamp("2015-01-02"), False], + [3, 4.5, pd.Timestamp("2015-01-03"), False], + [4, 5.5, pd.Timestamp("2015-01-04"), True], + ], + columns=["a", "b", "c", "d"], + ) + expected["c"] = expected["c"].astype(f"M8[{unit}]") + tm.assert_frame_equal(actual, expected) + + actual = pd.read_excel( + "testskiprows" + read_ext, + sheet_name="skiprows_list", + skiprows=np.array([0, 2]), + ) + tm.assert_frame_equal(actual, expected) + + # GH36435 + actual = pd.read_excel( + "testskiprows" + read_ext, + sheet_name="skiprows_list", + skiprows=lambda x: x in [0, 2], + ) + tm.assert_frame_equal(actual, expected) + + actual = pd.read_excel( + "testskiprows" + read_ext, + sheet_name="skiprows_list", + skiprows=3, + names=["a", "b", "c", "d"], + ) + expected = DataFrame( + [ + # [1, 2.5, pd.Timestamp("2015-01-01"), True], + [2, 3.5, pd.Timestamp("2015-01-02"), False], + [3, 4.5, pd.Timestamp("2015-01-03"), False], + [4, 5.5, pd.Timestamp("2015-01-04"), True], + ], + columns=["a", "b", "c", "d"], + ) + expected["c"] = expected["c"].astype(f"M8[{unit}]") + tm.assert_frame_equal(actual, expected) + + def test_read_excel_skiprows_callable_not_in(self, request, engine, read_ext): + # GH 4903 + xfail_datetimes_with_pyxlsb(engine, request) + unit = get_exp_unit(read_ext, engine) + + actual = pd.read_excel( + "testskiprows" + read_ext, + sheet_name="skiprows_list", + skiprows=lambda x: x not in [1, 3, 5], + ) + expected = DataFrame( + [ + [1, 2.5, pd.Timestamp("2015-01-01"), True], + # [2, 3.5, pd.Timestamp("2015-01-02"), False], + [3, 4.5, pd.Timestamp("2015-01-03"), False], + # [4, 5.5, pd.Timestamp("2015-01-04"), True], + ], + columns=["a", "b", "c", "d"], + ) + expected["c"] = expected["c"].astype(f"M8[{unit}]") + tm.assert_frame_equal(actual, expected) + + def test_read_excel_nrows(self, read_ext): + # GH 16645 + num_rows_to_pull = 5 + actual = pd.read_excel("test1" + read_ext, nrows=num_rows_to_pull) + expected = pd.read_excel("test1" + read_ext) + expected = expected[:num_rows_to_pull] + tm.assert_frame_equal(actual, expected) + + def test_read_excel_nrows_greater_than_nrows_in_file(self, read_ext): + # GH 16645 + expected = pd.read_excel("test1" + read_ext) + num_records_in_file = len(expected) + num_rows_to_pull = num_records_in_file + 10 + actual = pd.read_excel("test1" + read_ext, nrows=num_rows_to_pull) + tm.assert_frame_equal(actual, expected) + + def test_read_excel_nrows_non_integer_parameter(self, read_ext): + # GH 16645 + msg = "'nrows' must be an integer >=0" + with pytest.raises(ValueError, match=msg): + pd.read_excel("test1" + read_ext, nrows="5") + + @pytest.mark.parametrize( + "filename,sheet_name,header,index_col,skiprows", + [ + ("testmultiindex", "mi_column", [0, 1], 0, None), + ("testmultiindex", "mi_index", None, [0, 1], None), + ("testmultiindex", "both", [0, 1], [0, 1], None), + ("testmultiindex", "mi_column_name", [0, 1], 0, None), + ("testskiprows", "skiprows_list", None, None, [0, 2]), + ("testskiprows", "skiprows_list", None, None, lambda x: x in (0, 2)), + ], + ) + def test_read_excel_nrows_params( + self, read_ext, filename, sheet_name, header, index_col, skiprows + ): + """ + For various parameters, we should get the same result whether we + limit the rows during load (nrows=3) or after (df.iloc[:3]). + """ + # GH 46894 + expected = pd.read_excel( + filename + read_ext, + sheet_name=sheet_name, + header=header, + index_col=index_col, + skiprows=skiprows, + ).iloc[:3] + actual = pd.read_excel( + filename + read_ext, + sheet_name=sheet_name, + header=header, + index_col=index_col, + skiprows=skiprows, + nrows=3, + ) + tm.assert_frame_equal(actual, expected) + + def test_deprecated_kwargs(self, read_ext): + with pytest.raises(TypeError, match="but 3 positional arguments"): + pd.read_excel("test1" + read_ext, "Sheet1", 0) + + def test_no_header_with_list_index_col(self, read_ext): + # GH 31783 + file_name = "testmultiindex" + read_ext + data = [("B", "B"), ("key", "val"), (3, 4), (3, 4)] + idx = MultiIndex.from_tuples( + [("A", "A"), ("key", "val"), (1, 2), (1, 2)], names=(0, 1) + ) + expected = DataFrame(data, index=idx, columns=(2, 3)) + result = pd.read_excel( + file_name, sheet_name="index_col_none", index_col=[0, 1], header=None + ) + tm.assert_frame_equal(expected, result) + + def test_one_col_noskip_blank_line(self, read_ext): + # GH 39808 + file_name = "one_col_blank_line" + read_ext + data = [0.5, np.nan, 1, 2] + expected = DataFrame(data, columns=["numbers"]) + result = pd.read_excel(file_name) + tm.assert_frame_equal(result, expected) + + def test_multiheader_two_blank_lines(self, read_ext): + # GH 40442 + file_name = "testmultiindex" + read_ext + columns = MultiIndex.from_tuples([("a", "A"), ("b", "B")]) + data = [[np.nan, np.nan], [np.nan, np.nan], [1, 3], [2, 4]] + expected = DataFrame(data, columns=columns) + result = pd.read_excel( + file_name, sheet_name="mi_column_empty_rows", header=[0, 1] + ) + tm.assert_frame_equal(result, expected) + + def test_trailing_blanks(self, read_ext): + """ + Sheets can contain blank cells with no data. Some of our readers + were including those cells, creating many empty rows and columns + """ + file_name = "trailing_blanks" + read_ext + result = pd.read_excel(file_name) + assert result.shape == (3, 3) + + def test_ignore_chartsheets_by_str(self, request, engine, read_ext): + # GH 41448 + if read_ext == ".ods": + pytest.skip("chartsheets do not exist in the ODF format") + if engine == "pyxlsb": + request.applymarker( + pytest.mark.xfail( + reason="pyxlsb can't distinguish chartsheets from worksheets" + ) + ) + with pytest.raises(ValueError, match="Worksheet named 'Chart1' not found"): + pd.read_excel("chartsheet" + read_ext, sheet_name="Chart1") + + def test_ignore_chartsheets_by_int(self, request, engine, read_ext): + # GH 41448 + if read_ext == ".ods": + pytest.skip("chartsheets do not exist in the ODF format") + if engine == "pyxlsb": + request.applymarker( + pytest.mark.xfail( + reason="pyxlsb can't distinguish chartsheets from worksheets" + ) + ) + with pytest.raises( + ValueError, match="Worksheet index 1 is invalid, 1 worksheets found" + ): + pd.read_excel("chartsheet" + read_ext, sheet_name=1) + + def test_euro_decimal_format(self, read_ext): + # copied from read_csv + result = pd.read_excel("test_decimal" + read_ext, decimal=",", skiprows=1) + expected = DataFrame( + [ + [1, 1521.1541, 187101.9543, "ABC", "poi", 4.738797819], + [2, 121.12, 14897.76, "DEF", "uyt", 0.377320872], + [3, 878.158, 108013.434, "GHI", "rez", 2.735694704], + ], + columns=["Id", "Number1", "Number2", "Text1", "Text2", "Number3"], + ) + tm.assert_frame_equal(result, expected) + + +class TestExcelFileRead: + def test_deprecate_bytes_input(self, engine, read_ext): + # GH 53830 + msg = ( + "Passing bytes to 'read_excel' is deprecated and " + "will be removed in a future version. To read from a " + "byte string, wrap it in a `BytesIO` object." + ) + + with tm.assert_produces_warning( + FutureWarning, match=msg, raise_on_extra_warnings=False + ): + with open("test1" + read_ext, "rb") as f: + pd.read_excel(f.read(), engine=engine) + + @pytest.fixture(autouse=True) + def cd_and_set_engine(self, engine, datapath, monkeypatch): + """ + Change directory and set engine for ExcelFile objects. + """ + func = partial(pd.ExcelFile, engine=engine) + monkeypatch.chdir(datapath("io", "data", "excel")) + monkeypatch.setattr(pd, "ExcelFile", func) + + def test_engine_used(self, read_ext, engine): + expected_defaults = { + "xlsx": "openpyxl", + "xlsm": "openpyxl", + "xlsb": "pyxlsb", + "xls": "xlrd", + "ods": "odf", + } + + with pd.ExcelFile("test1" + read_ext) as excel: + result = excel.engine + + if engine is not None: + expected = engine + else: + expected = expected_defaults[read_ext[1:]] + assert result == expected + + def test_excel_passes_na(self, read_ext): + with pd.ExcelFile("test4" + read_ext) as excel: + parsed = pd.read_excel( + excel, sheet_name="Sheet1", keep_default_na=False, na_values=["apple"] + ) + expected = DataFrame( + [["NA"], [1], ["NA"], [np.nan], ["rabbit"]], columns=["Test"] + ) + tm.assert_frame_equal(parsed, expected) + + with pd.ExcelFile("test4" + read_ext) as excel: + parsed = pd.read_excel( + excel, sheet_name="Sheet1", keep_default_na=True, na_values=["apple"] + ) + expected = DataFrame( + [[np.nan], [1], [np.nan], [np.nan], ["rabbit"]], columns=["Test"] + ) + tm.assert_frame_equal(parsed, expected) + + # 13967 + with pd.ExcelFile("test5" + read_ext) as excel: + parsed = pd.read_excel( + excel, sheet_name="Sheet1", keep_default_na=False, na_values=["apple"] + ) + expected = DataFrame( + [["1.#QNAN"], [1], ["nan"], [np.nan], ["rabbit"]], columns=["Test"] + ) + tm.assert_frame_equal(parsed, expected) + + with pd.ExcelFile("test5" + read_ext) as excel: + parsed = pd.read_excel( + excel, sheet_name="Sheet1", keep_default_na=True, na_values=["apple"] + ) + expected = DataFrame( + [[np.nan], [1], [np.nan], [np.nan], ["rabbit"]], columns=["Test"] + ) + tm.assert_frame_equal(parsed, expected) + + @pytest.mark.parametrize("na_filter", [None, True, False]) + def test_excel_passes_na_filter(self, read_ext, na_filter): + # gh-25453 + kwargs = {} + + if na_filter is not None: + kwargs["na_filter"] = na_filter + + with pd.ExcelFile("test5" + read_ext) as excel: + parsed = pd.read_excel( + excel, + sheet_name="Sheet1", + keep_default_na=True, + na_values=["apple"], + **kwargs, + ) + + if na_filter is False: + expected = [["1.#QNAN"], [1], ["nan"], ["apple"], ["rabbit"]] + else: + expected = [[np.nan], [1], [np.nan], [np.nan], ["rabbit"]] + + expected = DataFrame(expected, columns=["Test"]) + tm.assert_frame_equal(parsed, expected) + + def test_excel_table_sheet_by_index(self, request, engine, read_ext, df_ref): + xfail_datetimes_with_pyxlsb(engine, request) + + expected = df_ref + adjust_expected(expected, read_ext, engine) + + with pd.ExcelFile("test1" + read_ext) as excel: + df1 = pd.read_excel(excel, sheet_name=0, index_col=0) + df2 = pd.read_excel(excel, sheet_name=1, skiprows=[1], index_col=0) + tm.assert_frame_equal(df1, expected) + tm.assert_frame_equal(df2, expected) + + with pd.ExcelFile("test1" + read_ext) as excel: + df1 = excel.parse(0, index_col=0) + df2 = excel.parse(1, skiprows=[1], index_col=0) + tm.assert_frame_equal(df1, expected) + tm.assert_frame_equal(df2, expected) + + with pd.ExcelFile("test1" + read_ext) as excel: + df3 = pd.read_excel(excel, sheet_name=0, index_col=0, skipfooter=1) + tm.assert_frame_equal(df3, df1.iloc[:-1]) + + with pd.ExcelFile("test1" + read_ext) as excel: + df3 = excel.parse(0, index_col=0, skipfooter=1) + + tm.assert_frame_equal(df3, df1.iloc[:-1]) + + def test_sheet_name(self, request, engine, read_ext, df_ref): + xfail_datetimes_with_pyxlsb(engine, request) + + expected = df_ref + adjust_expected(expected, read_ext, engine) + + filename = "test1" + sheet_name = "Sheet1" + + with pd.ExcelFile(filename + read_ext) as excel: + df1_parse = excel.parse(sheet_name=sheet_name, index_col=0) # doc + + with pd.ExcelFile(filename + read_ext) as excel: + df2_parse = excel.parse(index_col=0, sheet_name=sheet_name) + + tm.assert_frame_equal(df1_parse, expected) + tm.assert_frame_equal(df2_parse, expected) + + @pytest.mark.parametrize( + "sheet_name", + [3, [0, 3], [3, 0], "Sheet4", ["Sheet1", "Sheet4"], ["Sheet4", "Sheet1"]], + ) + def test_bad_sheetname_raises(self, read_ext, sheet_name): + # GH 39250 + msg = "Worksheet index 3 is invalid|Worksheet named 'Sheet4' not found" + with pytest.raises(ValueError, match=msg): + with pd.ExcelFile("blank" + read_ext) as excel: + excel.parse(sheet_name=sheet_name) + + def test_excel_read_buffer(self, engine, read_ext): + pth = "test1" + read_ext + expected = pd.read_excel(pth, sheet_name="Sheet1", index_col=0, engine=engine) + + with open(pth, "rb") as f: + with pd.ExcelFile(f) as xls: + actual = pd.read_excel(xls, sheet_name="Sheet1", index_col=0) + + tm.assert_frame_equal(expected, actual) + + def test_reader_closes_file(self, engine, read_ext): + with open("test1" + read_ext, "rb") as f: + with pd.ExcelFile(f) as xlsx: + # parses okay + pd.read_excel(xlsx, sheet_name="Sheet1", index_col=0, engine=engine) + + assert f.closed + + def test_conflicting_excel_engines(self, read_ext): + # GH 26566 + msg = "Engine should not be specified when passing an ExcelFile" + + with pd.ExcelFile("test1" + read_ext) as xl: + with pytest.raises(ValueError, match=msg): + pd.read_excel(xl, engine="foo") + + def test_excel_read_binary(self, engine, read_ext): + # GH 15914 + expected = pd.read_excel("test1" + read_ext, engine=engine) + + with open("test1" + read_ext, "rb") as f: + data = f.read() + + actual = pd.read_excel(BytesIO(data), engine=engine) + tm.assert_frame_equal(expected, actual) + + def test_excel_read_binary_via_read_excel(self, read_ext, engine): + # GH 38424 + with open("test1" + read_ext, "rb") as f: + result = pd.read_excel(f, engine=engine) + expected = pd.read_excel("test1" + read_ext, engine=engine) + tm.assert_frame_equal(result, expected) + + def test_read_excel_header_index_out_of_range(self, engine): + # GH#43143 + with open("df_header_oob.xlsx", "rb") as f: + with pytest.raises(ValueError, match="exceeds maximum"): + pd.read_excel(f, header=[0, 1]) + + @pytest.mark.parametrize("filename", ["df_empty.xlsx", "df_equals.xlsx"]) + def test_header_with_index_col(self, filename): + # GH 33476 + idx = Index(["Z"], name="I2") + cols = MultiIndex.from_tuples([("A", "B"), ("A", "B.1")], names=["I11", "I12"]) + expected = DataFrame([[1, 3]], index=idx, columns=cols, dtype="int64") + result = pd.read_excel( + filename, sheet_name="Sheet1", index_col=0, header=[0, 1] + ) + tm.assert_frame_equal(expected, result) + + def test_read_datetime_multiindex(self, request, engine, read_ext): + # GH 34748 + xfail_datetimes_with_pyxlsb(engine, request) + + f = "test_datetime_mi" + read_ext + with pd.ExcelFile(f) as excel: + actual = pd.read_excel(excel, header=[0, 1], index_col=0, engine=engine) + + unit = get_exp_unit(read_ext, engine) + dti = pd.DatetimeIndex(["2020-02-29", "2020-03-01"], dtype=f"M8[{unit}]") + expected_column_index = MultiIndex.from_arrays( + [dti[:1], dti[1:]], + names=[ + dti[0].to_pydatetime(), + dti[1].to_pydatetime(), + ], + ) + expected = DataFrame([], index=[], columns=expected_column_index) + + tm.assert_frame_equal(expected, actual) + + def test_engine_invalid_option(self, read_ext): + # read_ext includes the '.' hence the weird formatting + with pytest.raises(ValueError, match="Value must be one of *"): + with pd.option_context(f"io.excel{read_ext}.reader", "abc"): + pass + + def test_ignore_chartsheets(self, request, engine, read_ext): + # GH 41448 + if read_ext == ".ods": + pytest.skip("chartsheets do not exist in the ODF format") + if engine == "pyxlsb": + request.applymarker( + pytest.mark.xfail( + reason="pyxlsb can't distinguish chartsheets from worksheets" + ) + ) + with pd.ExcelFile("chartsheet" + read_ext) as excel: + assert excel.sheet_names == ["Sheet1"] + + def test_corrupt_files_closed(self, engine, read_ext): + # GH41778 + errors = (BadZipFile,) + if engine is None: + pytest.skip(f"Invalid test for engine={engine}") + elif engine == "xlrd": + import xlrd + + errors = (BadZipFile, xlrd.biffh.XLRDError) + elif engine == "calamine": + from python_calamine import CalamineError + + errors = (CalamineError,) + + with tm.ensure_clean(f"corrupt{read_ext}") as file: + Path(file).write_text("corrupt", encoding="utf-8") + with tm.assert_produces_warning(False): + try: + pd.ExcelFile(file, engine=engine) + except errors: + pass diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/excel/test_style.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/excel/test_style.py new file mode 100644 index 0000000000000000000000000000000000000000..89615172688d7b56fbb070dbcd4750365d7d612d --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/excel/test_style.py @@ -0,0 +1,298 @@ +import contextlib +import time + +import numpy as np +import pytest + +from pandas.compat import is_platform_windows +import pandas.util._test_decorators as td + +from pandas import ( + DataFrame, + read_excel, +) +import pandas._testing as tm + +from pandas.io.excel import ExcelWriter +from pandas.io.formats.excel import ExcelFormatter + +pytest.importorskip("jinja2") +# jinja2 is currently required for Styler.__init__(). Technically Styler.to_excel +# could compute styles and render to excel without jinja2, since there is no +# 'template' file, but this needs the import error to delayed until render time. + +if is_platform_windows(): + pytestmark = pytest.mark.single_cpu + + +def assert_equal_cell_styles(cell1, cell2): + # TODO: should find a better way to check equality + assert cell1.alignment.__dict__ == cell2.alignment.__dict__ + assert cell1.border.__dict__ == cell2.border.__dict__ + assert cell1.fill.__dict__ == cell2.fill.__dict__ + assert cell1.font.__dict__ == cell2.font.__dict__ + assert cell1.number_format == cell2.number_format + assert cell1.protection.__dict__ == cell2.protection.__dict__ + + +@pytest.mark.parametrize( + "engine", + ["xlsxwriter", "openpyxl"], +) +def test_styler_to_excel_unstyled(engine): + # compare DataFrame.to_excel and Styler.to_excel when no styles applied + pytest.importorskip(engine) + df = DataFrame(np.random.default_rng(2).standard_normal((2, 2))) + with tm.ensure_clean(".xlsx") as path: + with ExcelWriter(path, engine=engine) as writer: + df.to_excel(writer, sheet_name="dataframe") + df.style.to_excel(writer, sheet_name="unstyled") + + openpyxl = pytest.importorskip("openpyxl") # test loading only with openpyxl + with contextlib.closing(openpyxl.load_workbook(path)) as wb: + for col1, col2 in zip(wb["dataframe"].columns, wb["unstyled"].columns): + assert len(col1) == len(col2) + for cell1, cell2 in zip(col1, col2): + assert cell1.value == cell2.value + assert_equal_cell_styles(cell1, cell2) + + +shared_style_params = [ + ( + "background-color: #111222", + ["fill", "fgColor", "rgb"], + {"xlsxwriter": "FF111222", "openpyxl": "00111222"}, + ), + ( + "color: #111222", + ["font", "color", "value"], + {"xlsxwriter": "FF111222", "openpyxl": "00111222"}, + ), + ("font-family: Arial;", ["font", "name"], "arial"), + ("font-weight: bold;", ["font", "b"], True), + ("font-style: italic;", ["font", "i"], True), + ("text-decoration: underline;", ["font", "u"], "single"), + ("number-format: $??,???.00;", ["number_format"], "$??,???.00"), + ("text-align: left;", ["alignment", "horizontal"], "left"), + ( + "vertical-align: bottom;", + ["alignment", "vertical"], + {"xlsxwriter": None, "openpyxl": "bottom"}, # xlsxwriter Fails + ), + ("vertical-align: middle;", ["alignment", "vertical"], "center"), + # Border widths + ("border-left: 2pt solid red", ["border", "left", "style"], "medium"), + ("border-left: 1pt dotted red", ["border", "left", "style"], "dotted"), + ("border-left: 2pt dotted red", ["border", "left", "style"], "mediumDashDotDot"), + ("border-left: 1pt dashed red", ["border", "left", "style"], "dashed"), + ("border-left: 2pt dashed red", ["border", "left", "style"], "mediumDashed"), + ("border-left: 1pt solid red", ["border", "left", "style"], "thin"), + ("border-left: 3pt solid red", ["border", "left", "style"], "thick"), + # Border expansion + ( + "border-left: 2pt solid #111222", + ["border", "left", "color", "rgb"], + {"xlsxwriter": "FF111222", "openpyxl": "00111222"}, + ), + ("border: 1pt solid red", ["border", "top", "style"], "thin"), + ( + "border: 1pt solid #111222", + ["border", "top", "color", "rgb"], + {"xlsxwriter": "FF111222", "openpyxl": "00111222"}, + ), + ("border: 1pt solid red", ["border", "right", "style"], "thin"), + ( + "border: 1pt solid #111222", + ["border", "right", "color", "rgb"], + {"xlsxwriter": "FF111222", "openpyxl": "00111222"}, + ), + ("border: 1pt solid red", ["border", "bottom", "style"], "thin"), + ( + "border: 1pt solid #111222", + ["border", "bottom", "color", "rgb"], + {"xlsxwriter": "FF111222", "openpyxl": "00111222"}, + ), + ("border: 1pt solid red", ["border", "left", "style"], "thin"), + ( + "border: 1pt solid #111222", + ["border", "left", "color", "rgb"], + {"xlsxwriter": "FF111222", "openpyxl": "00111222"}, + ), + # Border styles + ( + "border-left-style: hair; border-left-color: black", + ["border", "left", "style"], + "hair", + ), +] + + +@pytest.mark.parametrize( + "engine", + ["xlsxwriter", "openpyxl"], +) +@pytest.mark.parametrize("css, attrs, expected", shared_style_params) +def test_styler_to_excel_basic(engine, css, attrs, expected): + pytest.importorskip(engine) + df = DataFrame(np.random.default_rng(2).standard_normal((1, 1))) + styler = df.style.map(lambda x: css) + + with tm.ensure_clean(".xlsx") as path: + with ExcelWriter(path, engine=engine) as writer: + df.to_excel(writer, sheet_name="dataframe") + styler.to_excel(writer, sheet_name="styled") + + openpyxl = pytest.importorskip("openpyxl") # test loading only with openpyxl + with contextlib.closing(openpyxl.load_workbook(path)) as wb: + # test unstyled data cell does not have expected styles + # test styled cell has expected styles + u_cell, s_cell = wb["dataframe"].cell(2, 2), wb["styled"].cell(2, 2) + for attr in attrs: + u_cell, s_cell = getattr(u_cell, attr, None), getattr(s_cell, attr) + + if isinstance(expected, dict): + assert u_cell is None or u_cell != expected[engine] + assert s_cell == expected[engine] + else: + assert u_cell is None or u_cell != expected + assert s_cell == expected + + +@pytest.mark.parametrize( + "engine", + ["xlsxwriter", "openpyxl"], +) +@pytest.mark.parametrize("css, attrs, expected", shared_style_params) +def test_styler_to_excel_basic_indexes(engine, css, attrs, expected): + pytest.importorskip(engine) + df = DataFrame(np.random.default_rng(2).standard_normal((1, 1))) + + styler = df.style + styler.map_index(lambda x: css, axis=0) + styler.map_index(lambda x: css, axis=1) + + null_styler = df.style + null_styler.map(lambda x: "null: css;") + null_styler.map_index(lambda x: "null: css;", axis=0) + null_styler.map_index(lambda x: "null: css;", axis=1) + + with tm.ensure_clean(".xlsx") as path: + with ExcelWriter(path, engine=engine) as writer: + null_styler.to_excel(writer, sheet_name="null_styled") + styler.to_excel(writer, sheet_name="styled") + + openpyxl = pytest.importorskip("openpyxl") # test loading only with openpyxl + with contextlib.closing(openpyxl.load_workbook(path)) as wb: + # test null styled index cells does not have expected styles + # test styled cell has expected styles + ui_cell, si_cell = wb["null_styled"].cell(2, 1), wb["styled"].cell(2, 1) + uc_cell, sc_cell = wb["null_styled"].cell(1, 2), wb["styled"].cell(1, 2) + for attr in attrs: + ui_cell, si_cell = getattr(ui_cell, attr, None), getattr(si_cell, attr) + uc_cell, sc_cell = getattr(uc_cell, attr, None), getattr(sc_cell, attr) + + if isinstance(expected, dict): + assert ui_cell is None or ui_cell != expected[engine] + assert si_cell == expected[engine] + assert uc_cell is None or uc_cell != expected[engine] + assert sc_cell == expected[engine] + else: + assert ui_cell is None or ui_cell != expected + assert si_cell == expected + assert uc_cell is None or uc_cell != expected + assert sc_cell == expected + + +# From https://openpyxl.readthedocs.io/en/stable/api/openpyxl.styles.borders.html +# Note: Leaving behavior of "width"-type styles undefined; user should use border-width +# instead +excel_border_styles = [ + # "thin", + "dashed", + "mediumDashDot", + "dashDotDot", + "hair", + "dotted", + "mediumDashDotDot", + # "medium", + "double", + "dashDot", + "slantDashDot", + # "thick", + "mediumDashed", +] + + +@pytest.mark.parametrize( + "engine", + ["xlsxwriter", "openpyxl"], +) +@pytest.mark.parametrize("border_style", excel_border_styles) +def test_styler_to_excel_border_style(engine, border_style): + css = f"border-left: {border_style} black thin" + attrs = ["border", "left", "style"] + expected = border_style + + pytest.importorskip(engine) + df = DataFrame(np.random.default_rng(2).standard_normal((1, 1))) + styler = df.style.map(lambda x: css) + + with tm.ensure_clean(".xlsx") as path: + with ExcelWriter(path, engine=engine) as writer: + df.to_excel(writer, sheet_name="dataframe") + styler.to_excel(writer, sheet_name="styled") + + openpyxl = pytest.importorskip("openpyxl") # test loading only with openpyxl + with contextlib.closing(openpyxl.load_workbook(path)) as wb: + # test unstyled data cell does not have expected styles + # test styled cell has expected styles + u_cell, s_cell = wb["dataframe"].cell(2, 2), wb["styled"].cell(2, 2) + for attr in attrs: + u_cell, s_cell = getattr(u_cell, attr, None), getattr(s_cell, attr) + + if isinstance(expected, dict): + assert u_cell is None or u_cell != expected[engine] + assert s_cell == expected[engine] + else: + assert u_cell is None or u_cell != expected + assert s_cell == expected + + +def test_styler_custom_converter(): + openpyxl = pytest.importorskip("openpyxl") + + def custom_converter(css): + return {"font": {"color": {"rgb": "111222"}}} + + df = DataFrame(np.random.default_rng(2).standard_normal((1, 1))) + styler = df.style.map(lambda x: "color: #888999") + with tm.ensure_clean(".xlsx") as path: + with ExcelWriter(path, engine="openpyxl") as writer: + ExcelFormatter(styler, style_converter=custom_converter).write( + writer, sheet_name="custom" + ) + + with contextlib.closing(openpyxl.load_workbook(path)) as wb: + assert wb["custom"].cell(2, 2).font.color.value == "00111222" + + +@pytest.mark.single_cpu +@td.skip_if_not_us_locale +def test_styler_to_s3(s3_public_bucket, s3so): + # GH#46381 + + mock_bucket_name, target_file = s3_public_bucket.name, "test.xlsx" + df = DataFrame({"x": [1, 2, 3], "y": [2, 4, 6]}) + styler = df.style.set_sticky(axis="index") + styler.to_excel(f"s3://{mock_bucket_name}/{target_file}", storage_options=s3so) + timeout = 5 + while True: + if target_file in (obj.key for obj in s3_public_bucket.objects.all()): + break + time.sleep(0.1) + timeout -= 0.1 + assert timeout > 0, "Timed out waiting for file to appear on moto" + result = read_excel( + f"s3://{mock_bucket_name}/{target_file}", index_col=0, storage_options=s3so + ) + tm.assert_frame_equal(result, df) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/excel/test_writers.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/excel/test_writers.py new file mode 100644 index 0000000000000000000000000000000000000000..d6e99de4f9d91a6da9b96c1601511d00ed5e36e2 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/excel/test_writers.py @@ -0,0 +1,1514 @@ +from datetime import ( + date, + datetime, + timedelta, +) +from functools import partial +from io import BytesIO +import os +import re + +import numpy as np +import pytest + +from pandas.compat import is_platform_windows +from pandas.compat._constants import PY310 +from pandas.compat._optional import import_optional_dependency +import pandas.util._test_decorators as td + +import pandas as pd +from pandas import ( + DataFrame, + Index, + MultiIndex, + date_range, + option_context, +) +import pandas._testing as tm + +from pandas.io.excel import ( + ExcelFile, + ExcelWriter, + _OpenpyxlWriter, + _XlsxWriter, + register_writer, +) +from pandas.io.excel._util import _writers + +if is_platform_windows(): + pytestmark = pytest.mark.single_cpu + + +def get_exp_unit(path: str) -> str: + return "ns" + + +@pytest.fixture +def frame(float_frame): + """ + Returns the first ten items in fixture "float_frame". + """ + return float_frame[:10] + + +@pytest.fixture(params=[True, False]) +def merge_cells(request): + return request.param + + +@pytest.fixture +def path(ext): + """ + Fixture to open file for use in each test case. + """ + with tm.ensure_clean(ext) as file_path: + yield file_path + + +@pytest.fixture +def set_engine(engine, ext): + """ + Fixture to set engine for use in each test case. + + Rather than requiring `engine=...` to be provided explicitly as an + argument in each test, this fixture sets a global option to dictate + which engine should be used to write Excel files. After executing + the test it rolls back said change to the global option. + """ + option_name = f"io.excel.{ext.strip('.')}.writer" + with option_context(option_name, engine): + yield + + +@pytest.mark.parametrize( + "ext", + [ + pytest.param(".xlsx", marks=[td.skip_if_no("openpyxl"), td.skip_if_no("xlrd")]), + pytest.param(".xlsm", marks=[td.skip_if_no("openpyxl"), td.skip_if_no("xlrd")]), + pytest.param( + ".xlsx", marks=[td.skip_if_no("xlsxwriter"), td.skip_if_no("xlrd")] + ), + pytest.param(".ods", marks=td.skip_if_no("odf")), + ], +) +class TestRoundTrip: + @pytest.mark.parametrize( + "header,expected", + [(None, DataFrame([np.nan] * 4)), (0, DataFrame({"Unnamed: 0": [np.nan] * 3}))], + ) + def test_read_one_empty_col_no_header(self, ext, header, expected): + # xref gh-12292 + filename = "no_header" + df = DataFrame([["", 1, 100], ["", 2, 200], ["", 3, 300], ["", 4, 400]]) + + with tm.ensure_clean(ext) as path: + df.to_excel(path, sheet_name=filename, index=False, header=False) + result = pd.read_excel( + path, sheet_name=filename, usecols=[0], header=header + ) + + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "header,expected", + [(None, DataFrame([0] + [np.nan] * 4)), (0, DataFrame([np.nan] * 4))], + ) + def test_read_one_empty_col_with_header(self, ext, header, expected): + filename = "with_header" + df = DataFrame([["", 1, 100], ["", 2, 200], ["", 3, 300], ["", 4, 400]]) + + with tm.ensure_clean(ext) as path: + df.to_excel(path, sheet_name="with_header", index=False, header=True) + result = pd.read_excel( + path, sheet_name=filename, usecols=[0], header=header + ) + + tm.assert_frame_equal(result, expected) + + def test_set_column_names_in_parameter(self, ext): + # GH 12870 : pass down column names associated with + # keyword argument names + refdf = DataFrame([[1, "foo"], [2, "bar"], [3, "baz"]], columns=["a", "b"]) + + with tm.ensure_clean(ext) as pth: + with ExcelWriter(pth) as writer: + refdf.to_excel( + writer, sheet_name="Data_no_head", header=False, index=False + ) + refdf.to_excel(writer, sheet_name="Data_with_head", index=False) + + refdf.columns = ["A", "B"] + + with ExcelFile(pth) as reader: + xlsdf_no_head = pd.read_excel( + reader, sheet_name="Data_no_head", header=None, names=["A", "B"] + ) + xlsdf_with_head = pd.read_excel( + reader, + sheet_name="Data_with_head", + index_col=None, + names=["A", "B"], + ) + + tm.assert_frame_equal(xlsdf_no_head, refdf) + tm.assert_frame_equal(xlsdf_with_head, refdf) + + def test_creating_and_reading_multiple_sheets(self, ext): + # see gh-9450 + # + # Test reading multiple sheets, from a runtime + # created Excel file with multiple sheets. + def tdf(col_sheet_name): + d, i = [11, 22, 33], [1, 2, 3] + return DataFrame(d, i, columns=[col_sheet_name]) + + sheets = ["AAA", "BBB", "CCC"] + + dfs = [tdf(s) for s in sheets] + dfs = dict(zip(sheets, dfs)) + + with tm.ensure_clean(ext) as pth: + with ExcelWriter(pth) as ew: + for sheetname, df in dfs.items(): + df.to_excel(ew, sheet_name=sheetname) + + dfs_returned = pd.read_excel(pth, sheet_name=sheets, index_col=0) + + for s in sheets: + tm.assert_frame_equal(dfs[s], dfs_returned[s]) + + def test_read_excel_multiindex_empty_level(self, ext): + # see gh-12453 + with tm.ensure_clean(ext) as path: + df = DataFrame( + { + ("One", "x"): {0: 1}, + ("Two", "X"): {0: 3}, + ("Two", "Y"): {0: 7}, + ("Zero", ""): {0: 0}, + } + ) + + expected = DataFrame( + { + ("One", "x"): {0: 1}, + ("Two", "X"): {0: 3}, + ("Two", "Y"): {0: 7}, + ("Zero", "Unnamed: 4_level_1"): {0: 0}, + } + ) + + df.to_excel(path) + actual = pd.read_excel(path, header=[0, 1], index_col=0) + tm.assert_frame_equal(actual, expected) + + df = DataFrame( + { + ("Beg", ""): {0: 0}, + ("Middle", "x"): {0: 1}, + ("Tail", "X"): {0: 3}, + ("Tail", "Y"): {0: 7}, + } + ) + + expected = DataFrame( + { + ("Beg", "Unnamed: 1_level_1"): {0: 0}, + ("Middle", "x"): {0: 1}, + ("Tail", "X"): {0: 3}, + ("Tail", "Y"): {0: 7}, + } + ) + + df.to_excel(path) + actual = pd.read_excel(path, header=[0, 1], index_col=0) + tm.assert_frame_equal(actual, expected) + + @pytest.mark.parametrize("c_idx_names", ["a", None]) + @pytest.mark.parametrize("r_idx_names", ["b", None]) + @pytest.mark.parametrize("c_idx_levels", [1, 3]) + @pytest.mark.parametrize("r_idx_levels", [1, 3]) + def test_excel_multindex_roundtrip( + self, ext, c_idx_names, r_idx_names, c_idx_levels, r_idx_levels, request + ): + # see gh-4679 + with tm.ensure_clean(ext) as pth: + # Empty name case current read in as + # unnamed levels, not Nones. + check_names = bool(r_idx_names) or r_idx_levels <= 1 + + if c_idx_levels == 1: + columns = Index(list("abcde")) + else: + columns = MultiIndex.from_arrays( + [range(5) for _ in range(c_idx_levels)], + names=[f"{c_idx_names}-{i}" for i in range(c_idx_levels)], + ) + if r_idx_levels == 1: + index = Index(list("ghijk")) + else: + index = MultiIndex.from_arrays( + [range(5) for _ in range(r_idx_levels)], + names=[f"{r_idx_names}-{i}" for i in range(r_idx_levels)], + ) + df = DataFrame( + 1.1 * np.ones((5, 5)), + columns=columns, + index=index, + ) + df.to_excel(pth) + + act = pd.read_excel( + pth, + index_col=list(range(r_idx_levels)), + header=list(range(c_idx_levels)), + ) + tm.assert_frame_equal(df, act, check_names=check_names) + + df.iloc[0, :] = np.nan + df.to_excel(pth) + + act = pd.read_excel( + pth, + index_col=list(range(r_idx_levels)), + header=list(range(c_idx_levels)), + ) + tm.assert_frame_equal(df, act, check_names=check_names) + + df.iloc[-1, :] = np.nan + df.to_excel(pth) + act = pd.read_excel( + pth, + index_col=list(range(r_idx_levels)), + header=list(range(c_idx_levels)), + ) + tm.assert_frame_equal(df, act, check_names=check_names) + + def test_read_excel_parse_dates(self, ext): + # see gh-11544, gh-12051 + df = DataFrame( + {"col": [1, 2, 3], "date_strings": date_range("2012-01-01", periods=3)} + ) + df2 = df.copy() + df2["date_strings"] = df2["date_strings"].dt.strftime("%m/%d/%Y") + + with tm.ensure_clean(ext) as pth: + df2.to_excel(pth) + + res = pd.read_excel(pth, index_col=0) + tm.assert_frame_equal(df2, res) + + res = pd.read_excel(pth, parse_dates=["date_strings"], index_col=0) + tm.assert_frame_equal(df, res) + + date_parser = lambda x: datetime.strptime(x, "%m/%d/%Y") + with tm.assert_produces_warning( + FutureWarning, + match="use 'date_format' instead", + raise_on_extra_warnings=False, + ): + res = pd.read_excel( + pth, + parse_dates=["date_strings"], + date_parser=date_parser, + index_col=0, + ) + tm.assert_frame_equal(df, res) + res = pd.read_excel( + pth, parse_dates=["date_strings"], date_format="%m/%d/%Y", index_col=0 + ) + tm.assert_frame_equal(df, res) + + def test_multiindex_interval_datetimes(self, ext): + # GH 30986 + midx = MultiIndex.from_arrays( + [ + range(4), + pd.interval_range( + start=pd.Timestamp("2020-01-01"), periods=4, freq="6ME" + ), + ] + ) + df = DataFrame(range(4), index=midx) + with tm.ensure_clean(ext) as pth: + df.to_excel(pth) + result = pd.read_excel(pth, index_col=[0, 1]) + expected = DataFrame( + range(4), + MultiIndex.from_arrays( + [ + range(4), + [ + "(2020-01-31 00:00:00, 2020-07-31 00:00:00]", + "(2020-07-31 00:00:00, 2021-01-31 00:00:00]", + "(2021-01-31 00:00:00, 2021-07-31 00:00:00]", + "(2021-07-31 00:00:00, 2022-01-31 00:00:00]", + ], + ] + ), + ) + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "engine,ext", + [ + pytest.param( + "openpyxl", + ".xlsx", + marks=[td.skip_if_no("openpyxl"), td.skip_if_no("xlrd")], + ), + pytest.param( + "openpyxl", + ".xlsm", + marks=[td.skip_if_no("openpyxl"), td.skip_if_no("xlrd")], + ), + pytest.param( + "xlsxwriter", + ".xlsx", + marks=[td.skip_if_no("xlsxwriter"), td.skip_if_no("xlrd")], + ), + pytest.param("odf", ".ods", marks=td.skip_if_no("odf")), + ], +) +@pytest.mark.usefixtures("set_engine") +class TestExcelWriter: + def test_excel_sheet_size(self, path): + # GH 26080 + breaking_row_count = 2**20 + 1 + breaking_col_count = 2**14 + 1 + # purposely using two arrays to prevent memory issues while testing + row_arr = np.zeros(shape=(breaking_row_count, 1)) + col_arr = np.zeros(shape=(1, breaking_col_count)) + row_df = DataFrame(row_arr) + col_df = DataFrame(col_arr) + + msg = "sheet is too large" + with pytest.raises(ValueError, match=msg): + row_df.to_excel(path) + + with pytest.raises(ValueError, match=msg): + col_df.to_excel(path) + + def test_excel_sheet_by_name_raise(self, path): + gt = DataFrame(np.random.default_rng(2).standard_normal((10, 2))) + gt.to_excel(path) + + with ExcelFile(path) as xl: + df = pd.read_excel(xl, sheet_name=0, index_col=0) + + tm.assert_frame_equal(gt, df) + + msg = "Worksheet named '0' not found" + with pytest.raises(ValueError, match=msg): + pd.read_excel(xl, "0") + + def test_excel_writer_context_manager(self, frame, path): + with ExcelWriter(path) as writer: + frame.to_excel(writer, sheet_name="Data1") + frame2 = frame.copy() + frame2.columns = frame.columns[::-1] + frame2.to_excel(writer, sheet_name="Data2") + + with ExcelFile(path) as reader: + found_df = pd.read_excel(reader, sheet_name="Data1", index_col=0) + found_df2 = pd.read_excel(reader, sheet_name="Data2", index_col=0) + + tm.assert_frame_equal(found_df, frame) + tm.assert_frame_equal(found_df2, frame2) + + def test_roundtrip(self, frame, path): + frame = frame.copy() + frame.iloc[:5, frame.columns.get_loc("A")] = np.nan + + frame.to_excel(path, sheet_name="test1") + frame.to_excel(path, sheet_name="test1", columns=["A", "B"]) + frame.to_excel(path, sheet_name="test1", header=False) + frame.to_excel(path, sheet_name="test1", index=False) + + # test roundtrip + frame.to_excel(path, sheet_name="test1") + recons = pd.read_excel(path, sheet_name="test1", index_col=0) + tm.assert_frame_equal(frame, recons) + + frame.to_excel(path, sheet_name="test1", index=False) + recons = pd.read_excel(path, sheet_name="test1", index_col=None) + recons.index = frame.index + tm.assert_frame_equal(frame, recons) + + frame.to_excel(path, sheet_name="test1", na_rep="NA") + recons = pd.read_excel(path, sheet_name="test1", index_col=0, na_values=["NA"]) + tm.assert_frame_equal(frame, recons) + + # GH 3611 + frame.to_excel(path, sheet_name="test1", na_rep="88") + recons = pd.read_excel(path, sheet_name="test1", index_col=0, na_values=["88"]) + tm.assert_frame_equal(frame, recons) + + frame.to_excel(path, sheet_name="test1", na_rep="88") + recons = pd.read_excel( + path, sheet_name="test1", index_col=0, na_values=[88, 88.0] + ) + tm.assert_frame_equal(frame, recons) + + # GH 6573 + frame.to_excel(path, sheet_name="Sheet1") + recons = pd.read_excel(path, index_col=0) + tm.assert_frame_equal(frame, recons) + + frame.to_excel(path, sheet_name="0") + recons = pd.read_excel(path, index_col=0) + tm.assert_frame_equal(frame, recons) + + # GH 8825 Pandas Series should provide to_excel method + s = frame["A"] + s.to_excel(path) + recons = pd.read_excel(path, index_col=0) + tm.assert_frame_equal(s.to_frame(), recons) + + def test_mixed(self, frame, path): + mixed_frame = frame.copy() + mixed_frame["foo"] = "bar" + + mixed_frame.to_excel(path, sheet_name="test1") + with ExcelFile(path) as reader: + recons = pd.read_excel(reader, sheet_name="test1", index_col=0) + tm.assert_frame_equal(mixed_frame, recons) + + def test_ts_frame(self, path): + unit = get_exp_unit(path) + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 4)), + columns=Index(list("ABCD")), + index=date_range("2000-01-01", periods=5, freq="B"), + ) + + # freq doesn't round-trip + index = pd.DatetimeIndex(np.asarray(df.index), freq=None) + df.index = index + + expected = df[:] + expected.index = expected.index.as_unit(unit) + + df.to_excel(path, sheet_name="test1") + with ExcelFile(path) as reader: + recons = pd.read_excel(reader, sheet_name="test1", index_col=0) + tm.assert_frame_equal(expected, recons) + + def test_basics_with_nan(self, frame, path): + frame = frame.copy() + frame.iloc[:5, frame.columns.get_loc("A")] = np.nan + frame.to_excel(path, sheet_name="test1") + frame.to_excel(path, sheet_name="test1", columns=["A", "B"]) + frame.to_excel(path, sheet_name="test1", header=False) + frame.to_excel(path, sheet_name="test1", index=False) + + @pytest.mark.parametrize("np_type", [np.int8, np.int16, np.int32, np.int64]) + def test_int_types(self, np_type, path): + # Test np.int values read come back as int + # (rather than float which is Excel's format). + df = DataFrame( + np.random.default_rng(2).integers(-10, 10, size=(10, 2)), dtype=np_type + ) + df.to_excel(path, sheet_name="test1") + + with ExcelFile(path) as reader: + recons = pd.read_excel(reader, sheet_name="test1", index_col=0) + + int_frame = df.astype(np.int64) + tm.assert_frame_equal(int_frame, recons) + + recons2 = pd.read_excel(path, sheet_name="test1", index_col=0) + tm.assert_frame_equal(int_frame, recons2) + + @pytest.mark.parametrize("np_type", [np.float16, np.float32, np.float64]) + def test_float_types(self, np_type, path): + # Test np.float values read come back as float. + df = DataFrame(np.random.default_rng(2).random(10), dtype=np_type) + df.to_excel(path, sheet_name="test1") + + with ExcelFile(path) as reader: + recons = pd.read_excel(reader, sheet_name="test1", index_col=0).astype( + np_type + ) + + tm.assert_frame_equal(df, recons) + + def test_bool_types(self, path): + # Test np.bool_ values read come back as float. + df = DataFrame([1, 0, True, False], dtype=np.bool_) + df.to_excel(path, sheet_name="test1") + + with ExcelFile(path) as reader: + recons = pd.read_excel(reader, sheet_name="test1", index_col=0).astype( + np.bool_ + ) + + tm.assert_frame_equal(df, recons) + + def test_inf_roundtrip(self, path): + df = DataFrame([(1, np.inf), (2, 3), (5, -np.inf)]) + df.to_excel(path, sheet_name="test1") + + with ExcelFile(path) as reader: + recons = pd.read_excel(reader, sheet_name="test1", index_col=0) + + tm.assert_frame_equal(df, recons) + + def test_sheets(self, frame, path): + # freq doesn't round-trip + unit = get_exp_unit(path) + tsframe = DataFrame( + np.random.default_rng(2).standard_normal((5, 4)), + columns=Index(list("ABCD")), + index=date_range("2000-01-01", periods=5, freq="B"), + ) + index = pd.DatetimeIndex(np.asarray(tsframe.index), freq=None) + tsframe.index = index + + expected = tsframe[:] + expected.index = expected.index.as_unit(unit) + + frame = frame.copy() + frame.iloc[:5, frame.columns.get_loc("A")] = np.nan + + frame.to_excel(path, sheet_name="test1") + frame.to_excel(path, sheet_name="test1", columns=["A", "B"]) + frame.to_excel(path, sheet_name="test1", header=False) + frame.to_excel(path, sheet_name="test1", index=False) + + # Test writing to separate sheets + with ExcelWriter(path) as writer: + frame.to_excel(writer, sheet_name="test1") + tsframe.to_excel(writer, sheet_name="test2") + with ExcelFile(path) as reader: + recons = pd.read_excel(reader, sheet_name="test1", index_col=0) + tm.assert_frame_equal(frame, recons) + recons = pd.read_excel(reader, sheet_name="test2", index_col=0) + tm.assert_frame_equal(expected, recons) + assert 2 == len(reader.sheet_names) + assert "test1" == reader.sheet_names[0] + assert "test2" == reader.sheet_names[1] + + def test_colaliases(self, frame, path): + frame = frame.copy() + frame.iloc[:5, frame.columns.get_loc("A")] = np.nan + + frame.to_excel(path, sheet_name="test1") + frame.to_excel(path, sheet_name="test1", columns=["A", "B"]) + frame.to_excel(path, sheet_name="test1", header=False) + frame.to_excel(path, sheet_name="test1", index=False) + + # column aliases + col_aliases = Index(["AA", "X", "Y", "Z"]) + frame.to_excel(path, sheet_name="test1", header=col_aliases) + with ExcelFile(path) as reader: + rs = pd.read_excel(reader, sheet_name="test1", index_col=0) + xp = frame.copy() + xp.columns = col_aliases + tm.assert_frame_equal(xp, rs) + + def test_roundtrip_indexlabels(self, merge_cells, frame, path): + frame = frame.copy() + frame.iloc[:5, frame.columns.get_loc("A")] = np.nan + + frame.to_excel(path, sheet_name="test1") + frame.to_excel(path, sheet_name="test1", columns=["A", "B"]) + frame.to_excel(path, sheet_name="test1", header=False) + frame.to_excel(path, sheet_name="test1", index=False) + + # test index_label + df = DataFrame(np.random.default_rng(2).standard_normal((10, 2))) >= 0 + df.to_excel( + path, sheet_name="test1", index_label=["test"], merge_cells=merge_cells + ) + with ExcelFile(path) as reader: + recons = pd.read_excel(reader, sheet_name="test1", index_col=0).astype( + np.int64 + ) + df.index.names = ["test"] + assert df.index.names == recons.index.names + + df = DataFrame(np.random.default_rng(2).standard_normal((10, 2))) >= 0 + df.to_excel( + path, + sheet_name="test1", + index_label=["test", "dummy", "dummy2"], + merge_cells=merge_cells, + ) + with ExcelFile(path) as reader: + recons = pd.read_excel(reader, sheet_name="test1", index_col=0).astype( + np.int64 + ) + df.index.names = ["test"] + assert df.index.names == recons.index.names + + df = DataFrame(np.random.default_rng(2).standard_normal((10, 2))) >= 0 + df.to_excel( + path, sheet_name="test1", index_label="test", merge_cells=merge_cells + ) + with ExcelFile(path) as reader: + recons = pd.read_excel(reader, sheet_name="test1", index_col=0).astype( + np.int64 + ) + df.index.names = ["test"] + tm.assert_frame_equal(df, recons.astype(bool)) + + frame.to_excel( + path, + sheet_name="test1", + columns=["A", "B", "C", "D"], + index=False, + merge_cells=merge_cells, + ) + # take 'A' and 'B' as indexes (same row as cols 'C', 'D') + df = frame.copy() + df = df.set_index(["A", "B"]) + + with ExcelFile(path) as reader: + recons = pd.read_excel(reader, sheet_name="test1", index_col=[0, 1]) + tm.assert_frame_equal(df, recons) + + def test_excel_roundtrip_indexname(self, merge_cells, path): + df = DataFrame(np.random.default_rng(2).standard_normal((10, 4))) + df.index.name = "foo" + + df.to_excel(path, merge_cells=merge_cells) + + with ExcelFile(path) as xf: + result = pd.read_excel(xf, sheet_name=xf.sheet_names[0], index_col=0) + + tm.assert_frame_equal(result, df) + assert result.index.name == "foo" + + def test_excel_roundtrip_datetime(self, merge_cells, path): + # datetime.date, not sure what to test here exactly + unit = get_exp_unit(path) + + # freq does not round-trip + tsframe = DataFrame( + np.random.default_rng(2).standard_normal((5, 4)), + columns=Index(list("ABCD")), + index=date_range("2000-01-01", periods=5, freq="B"), + ) + index = pd.DatetimeIndex(np.asarray(tsframe.index), freq=None) + tsframe.index = index + + tsf = tsframe.copy() + + tsf.index = [x.date() for x in tsframe.index] + tsf.to_excel(path, sheet_name="test1", merge_cells=merge_cells) + + with ExcelFile(path) as reader: + recons = pd.read_excel(reader, sheet_name="test1", index_col=0) + + expected = tsframe[:] + expected.index = expected.index.as_unit(unit) + tm.assert_frame_equal(expected, recons) + + def test_excel_date_datetime_format(self, ext, path): + # see gh-4133 + # + # Excel output format strings + unit = get_exp_unit(path) + + df = DataFrame( + [ + [date(2014, 1, 31), date(1999, 9, 24)], + [datetime(1998, 5, 26, 23, 33, 4), datetime(2014, 2, 28, 13, 5, 13)], + ], + index=["DATE", "DATETIME"], + columns=["X", "Y"], + ) + df_expected = DataFrame( + [ + [datetime(2014, 1, 31), datetime(1999, 9, 24)], + [datetime(1998, 5, 26, 23, 33, 4), datetime(2014, 2, 28, 13, 5, 13)], + ], + index=["DATE", "DATETIME"], + columns=["X", "Y"], + ) + df_expected = df_expected.astype(f"M8[{unit}]") + + with tm.ensure_clean(ext) as filename2: + with ExcelWriter(path) as writer1: + df.to_excel(writer1, sheet_name="test1") + + with ExcelWriter( + filename2, + date_format="DD.MM.YYYY", + datetime_format="DD.MM.YYYY HH-MM-SS", + ) as writer2: + df.to_excel(writer2, sheet_name="test1") + + with ExcelFile(path) as reader1: + rs1 = pd.read_excel(reader1, sheet_name="test1", index_col=0) + + with ExcelFile(filename2) as reader2: + rs2 = pd.read_excel(reader2, sheet_name="test1", index_col=0) + + tm.assert_frame_equal(rs1, rs2) + + # Since the reader returns a datetime object for dates, + # we need to use df_expected to check the result. + tm.assert_frame_equal(rs2, df_expected) + + @pytest.mark.filterwarnings( + "ignore:invalid value encountered in cast:RuntimeWarning" + ) + def test_to_excel_interval_no_labels(self, path, using_infer_string): + # see gh-19242 + # + # Test writing Interval without labels. + df = DataFrame( + np.random.default_rng(2).integers(-10, 10, size=(20, 1)), dtype=np.int64 + ) + expected = df.copy() + + df["new"] = pd.cut(df[0], 10) + expected["new"] = pd.cut(expected[0], 10).astype( + str if not using_infer_string else "str" + ) + + df.to_excel(path, sheet_name="test1") + with ExcelFile(path) as reader: + recons = pd.read_excel(reader, sheet_name="test1", index_col=0) + tm.assert_frame_equal(expected, recons) + + def test_to_excel_interval_labels(self, path): + # see gh-19242 + # + # Test writing Interval with labels. + df = DataFrame( + np.random.default_rng(2).integers(-10, 10, size=(20, 1)), dtype=np.int64 + ) + expected = df.copy() + intervals = pd.cut( + df[0], 10, labels=["A", "B", "C", "D", "E", "F", "G", "H", "I", "J"] + ) + df["new"] = intervals + expected["new"] = pd.Series(list(intervals)) + + df.to_excel(path, sheet_name="test1") + with ExcelFile(path) as reader: + recons = pd.read_excel(reader, sheet_name="test1", index_col=0) + tm.assert_frame_equal(expected, recons) + + def test_to_excel_timedelta(self, path): + # see gh-19242, gh-9155 + # + # Test writing timedelta to xls. + df = DataFrame( + np.random.default_rng(2).integers(-10, 10, size=(20, 1)), + columns=["A"], + dtype=np.int64, + ) + expected = df.copy() + + df["new"] = df["A"].apply(lambda x: timedelta(seconds=x)) + expected["new"] = expected["A"].apply( + lambda x: timedelta(seconds=x).total_seconds() / 86400 + ) + + df.to_excel(path, sheet_name="test1") + with ExcelFile(path) as reader: + recons = pd.read_excel(reader, sheet_name="test1", index_col=0) + tm.assert_frame_equal(expected, recons) + + def test_to_excel_periodindex(self, path): + # xp has a PeriodIndex + df = DataFrame( + np.random.default_rng(2).standard_normal((5, 4)), + columns=Index(list("ABCD")), + index=date_range("2000-01-01", periods=5, freq="B"), + ) + xp = df.resample("ME").mean().to_period("M") + + xp.to_excel(path, sheet_name="sht1") + + with ExcelFile(path) as reader: + rs = pd.read_excel(reader, sheet_name="sht1", index_col=0) + tm.assert_frame_equal(xp, rs.to_period("M")) + + def test_to_excel_multiindex(self, merge_cells, frame, path): + arrays = np.arange(len(frame.index) * 2, dtype=np.int64).reshape(2, -1) + new_index = MultiIndex.from_arrays(arrays, names=["first", "second"]) + frame.index = new_index + + frame.to_excel(path, sheet_name="test1", header=False) + frame.to_excel(path, sheet_name="test1", columns=["A", "B"]) + + # round trip + frame.to_excel(path, sheet_name="test1", merge_cells=merge_cells) + with ExcelFile(path) as reader: + df = pd.read_excel(reader, sheet_name="test1", index_col=[0, 1]) + tm.assert_frame_equal(frame, df) + + # GH13511 + def test_to_excel_multiindex_nan_label(self, merge_cells, path): + df = DataFrame( + { + "A": [None, 2, 3], + "B": [10, 20, 30], + "C": np.random.default_rng(2).random(3), + } + ) + df = df.set_index(["A", "B"]) + + df.to_excel(path, merge_cells=merge_cells) + df1 = pd.read_excel(path, index_col=[0, 1]) + tm.assert_frame_equal(df, df1) + + # Test for Issue 11328. If column indices are integers, make + # sure they are handled correctly for either setting of + # merge_cells + def test_to_excel_multiindex_cols(self, merge_cells, frame, path): + arrays = np.arange(len(frame.index) * 2, dtype=np.int64).reshape(2, -1) + new_index = MultiIndex.from_arrays(arrays, names=["first", "second"]) + frame.index = new_index + + new_cols_index = MultiIndex.from_tuples([(40, 1), (40, 2), (50, 1), (50, 2)]) + frame.columns = new_cols_index + header = [0, 1] + if not merge_cells: + header = 0 + + # round trip + frame.to_excel(path, sheet_name="test1", merge_cells=merge_cells) + with ExcelFile(path) as reader: + df = pd.read_excel( + reader, sheet_name="test1", header=header, index_col=[0, 1] + ) + if not merge_cells: + fm = frame.columns._format_multi(sparsify=False, include_names=False) + frame.columns = [".".join(map(str, q)) for q in zip(*fm)] + tm.assert_frame_equal(frame, df) + + def test_to_excel_multiindex_dates(self, merge_cells, path): + # try multiindex with dates + unit = get_exp_unit(path) + tsframe = DataFrame( + np.random.default_rng(2).standard_normal((5, 4)), + columns=Index(list("ABCD")), + index=date_range("2000-01-01", periods=5, freq="B"), + ) + tsframe.index = MultiIndex.from_arrays( + [ + tsframe.index.as_unit(unit), + np.arange(len(tsframe.index), dtype=np.int64), + ], + names=["time", "foo"], + ) + + tsframe.to_excel(path, sheet_name="test1", merge_cells=merge_cells) + with ExcelFile(path) as reader: + recons = pd.read_excel(reader, sheet_name="test1", index_col=[0, 1]) + + tm.assert_frame_equal(tsframe, recons) + assert recons.index.names == ("time", "foo") + + def test_to_excel_multiindex_no_write_index(self, path): + # Test writing and re-reading a MI without the index. GH 5616. + + # Initial non-MI frame. + frame1 = DataFrame({"a": [10, 20], "b": [30, 40], "c": [50, 60]}) + + # Add a MI. + frame2 = frame1.copy() + multi_index = MultiIndex.from_tuples([(70, 80), (90, 100)]) + frame2.index = multi_index + + # Write out to Excel without the index. + frame2.to_excel(path, sheet_name="test1", index=False) + + # Read it back in. + with ExcelFile(path) as reader: + frame3 = pd.read_excel(reader, sheet_name="test1") + + # Test that it is the same as the initial frame. + tm.assert_frame_equal(frame1, frame3) + + def test_to_excel_empty_multiindex(self, path): + # GH 19543. + expected = DataFrame([], columns=[0, 1, 2]) + + df = DataFrame([], index=MultiIndex.from_tuples([], names=[0, 1]), columns=[2]) + df.to_excel(path, sheet_name="test1") + + with ExcelFile(path) as reader: + result = pd.read_excel(reader, sheet_name="test1") + tm.assert_frame_equal( + result, expected, check_index_type=False, check_dtype=False + ) + + def test_to_excel_float_format(self, path): + df = DataFrame( + [[0.123456, 0.234567, 0.567567], [12.32112, 123123.2, 321321.2]], + index=["A", "B"], + columns=["X", "Y", "Z"], + ) + df.to_excel(path, sheet_name="test1", float_format="%.2f") + + with ExcelFile(path) as reader: + result = pd.read_excel(reader, sheet_name="test1", index_col=0) + + expected = DataFrame( + [[0.12, 0.23, 0.57], [12.32, 123123.20, 321321.20]], + index=["A", "B"], + columns=["X", "Y", "Z"], + ) + tm.assert_frame_equal(result, expected) + + def test_to_excel_output_encoding(self, ext): + # Avoid mixed inferred_type. + df = DataFrame( + [["\u0192", "\u0193", "\u0194"], ["\u0195", "\u0196", "\u0197"]], + index=["A\u0192", "B"], + columns=["X\u0193", "Y", "Z"], + ) + + with tm.ensure_clean("__tmp_to_excel_float_format__." + ext) as filename: + df.to_excel(filename, sheet_name="TestSheet") + result = pd.read_excel(filename, sheet_name="TestSheet", index_col=0) + tm.assert_frame_equal(result, df) + + def test_to_excel_unicode_filename(self, ext): + with tm.ensure_clean("\u0192u." + ext) as filename: + try: + with open(filename, "wb"): + pass + except UnicodeEncodeError: + pytest.skip("No unicode file names on this system") + + df = DataFrame( + [[0.123456, 0.234567, 0.567567], [12.32112, 123123.2, 321321.2]], + index=["A", "B"], + columns=["X", "Y", "Z"], + ) + df.to_excel(filename, sheet_name="test1", float_format="%.2f") + + with ExcelFile(filename) as reader: + result = pd.read_excel(reader, sheet_name="test1", index_col=0) + + expected = DataFrame( + [[0.12, 0.23, 0.57], [12.32, 123123.20, 321321.20]], + index=["A", "B"], + columns=["X", "Y", "Z"], + ) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("use_headers", [True, False]) + @pytest.mark.parametrize("r_idx_nlevels", [1, 2, 3]) + @pytest.mark.parametrize("c_idx_nlevels", [1, 2, 3]) + def test_excel_010_hemstring( + self, merge_cells, c_idx_nlevels, r_idx_nlevels, use_headers, path + ): + def roundtrip(data, header=True, parser_hdr=0, index=True): + data.to_excel(path, header=header, merge_cells=merge_cells, index=index) + + with ExcelFile(path) as xf: + return pd.read_excel( + xf, sheet_name=xf.sheet_names[0], header=parser_hdr + ) + + # Basic test. + parser_header = 0 if use_headers else None + res = roundtrip(DataFrame([0]), use_headers, parser_header) + + assert res.shape == (1, 2) + assert res.iloc[0, 0] is not np.nan + + # More complex tests with multi-index. + nrows = 5 + ncols = 3 + + # ensure limited functionality in 0.10 + # override of gh-2370 until sorted out in 0.11 + + if c_idx_nlevels == 1: + columns = Index([f"a-{i}" for i in range(ncols)], dtype=object) + else: + columns = MultiIndex.from_arrays( + [range(ncols) for _ in range(c_idx_nlevels)], + names=[f"i-{i}" for i in range(c_idx_nlevels)], + ) + if r_idx_nlevels == 1: + index = Index([f"b-{i}" for i in range(nrows)], dtype=object) + else: + index = MultiIndex.from_arrays( + [range(nrows) for _ in range(r_idx_nlevels)], + names=[f"j-{i}" for i in range(r_idx_nlevels)], + ) + + df = DataFrame( + np.ones((nrows, ncols)), + columns=columns, + index=index, + ) + + # This if will be removed once multi-column Excel writing + # is implemented. For now fixing gh-9794. + if c_idx_nlevels > 1: + msg = ( + "Writing to Excel with MultiIndex columns and no index " + "\\('index'=False\\) is not yet implemented." + ) + with pytest.raises(NotImplementedError, match=msg): + roundtrip(df, use_headers, index=False) + else: + res = roundtrip(df, use_headers) + + if use_headers: + assert res.shape == (nrows, ncols + r_idx_nlevels) + else: + # First row taken as columns. + assert res.shape == (nrows - 1, ncols + r_idx_nlevels) + + # No NaNs. + for r in range(len(res.index)): + for c in range(len(res.columns)): + assert res.iloc[r, c] is not np.nan + + def test_duplicated_columns(self, path): + # see gh-5235 + df = DataFrame([[1, 2, 3], [1, 2, 3], [1, 2, 3]], columns=["A", "B", "B"]) + df.to_excel(path, sheet_name="test1") + expected = DataFrame( + [[1, 2, 3], [1, 2, 3], [1, 2, 3]], columns=["A", "B", "B.1"] + ) + + # By default, we mangle. + result = pd.read_excel(path, sheet_name="test1", index_col=0) + tm.assert_frame_equal(result, expected) + + # see gh-11007, gh-10970 + df = DataFrame([[1, 2, 3, 4], [5, 6, 7, 8]], columns=["A", "B", "A", "B"]) + df.to_excel(path, sheet_name="test1") + + result = pd.read_excel(path, sheet_name="test1", index_col=0) + expected = DataFrame( + [[1, 2, 3, 4], [5, 6, 7, 8]], columns=["A", "B", "A.1", "B.1"] + ) + tm.assert_frame_equal(result, expected) + + # see gh-10982 + df.to_excel(path, sheet_name="test1", index=False, header=False) + result = pd.read_excel(path, sheet_name="test1", header=None) + + expected = DataFrame([[1, 2, 3, 4], [5, 6, 7, 8]]) + tm.assert_frame_equal(result, expected) + + def test_swapped_columns(self, path): + # Test for issue #5427. + write_frame = DataFrame({"A": [1, 1, 1], "B": [2, 2, 2]}) + write_frame.to_excel(path, sheet_name="test1", columns=["B", "A"]) + + read_frame = pd.read_excel(path, sheet_name="test1", header=0) + + tm.assert_series_equal(write_frame["A"], read_frame["A"]) + tm.assert_series_equal(write_frame["B"], read_frame["B"]) + + def test_invalid_columns(self, path): + # see gh-10982 + write_frame = DataFrame({"A": [1, 1, 1], "B": [2, 2, 2]}) + + with pytest.raises(KeyError, match="Not all names specified"): + write_frame.to_excel(path, sheet_name="test1", columns=["B", "C"]) + + with pytest.raises( + KeyError, match="'passes columns are not ALL present dataframe'" + ): + write_frame.to_excel(path, sheet_name="test1", columns=["C", "D"]) + + @pytest.mark.parametrize( + "to_excel_index,read_excel_index_col", + [ + (True, 0), # Include index in write to file + (False, None), # Dont include index in write to file + ], + ) + def test_write_subset_columns(self, path, to_excel_index, read_excel_index_col): + # GH 31677 + write_frame = DataFrame({"A": [1, 1, 1], "B": [2, 2, 2], "C": [3, 3, 3]}) + write_frame.to_excel( + path, sheet_name="col_subset_bug", columns=["A", "B"], index=to_excel_index + ) + + expected = write_frame[["A", "B"]] + read_frame = pd.read_excel( + path, sheet_name="col_subset_bug", index_col=read_excel_index_col + ) + + tm.assert_frame_equal(expected, read_frame) + + def test_comment_arg(self, path): + # see gh-18735 + # + # Test the comment argument functionality to pd.read_excel. + + # Create file to read in. + df = DataFrame({"A": ["one", "#one", "one"], "B": ["two", "two", "#two"]}) + df.to_excel(path, sheet_name="test_c") + + # Read file without comment arg. + result1 = pd.read_excel(path, sheet_name="test_c", index_col=0) + + result1.iloc[1, 0] = None + result1.iloc[1, 1] = None + result1.iloc[2, 1] = None + + result2 = pd.read_excel(path, sheet_name="test_c", comment="#", index_col=0) + tm.assert_frame_equal(result1, result2) + + def test_comment_default(self, path): + # Re issue #18735 + # Test the comment argument default to pd.read_excel + + # Create file to read in + df = DataFrame({"A": ["one", "#one", "one"], "B": ["two", "two", "#two"]}) + df.to_excel(path, sheet_name="test_c") + + # Read file with default and explicit comment=None + result1 = pd.read_excel(path, sheet_name="test_c") + result2 = pd.read_excel(path, sheet_name="test_c", comment=None) + tm.assert_frame_equal(result1, result2) + + def test_comment_used(self, path): + # see gh-18735 + # + # Test the comment argument is working as expected when used. + + # Create file to read in. + df = DataFrame({"A": ["one", "#one", "one"], "B": ["two", "two", "#two"]}) + df.to_excel(path, sheet_name="test_c") + + # Test read_frame_comment against manually produced expected output. + expected = DataFrame({"A": ["one", None, "one"], "B": ["two", None, None]}) + result = pd.read_excel(path, sheet_name="test_c", comment="#", index_col=0) + tm.assert_frame_equal(result, expected) + + def test_comment_empty_line(self, path): + # Re issue #18735 + # Test that pd.read_excel ignores commented lines at the end of file + + df = DataFrame({"a": ["1", "#2"], "b": ["2", "3"]}) + df.to_excel(path, index=False) + + # Test that all-comment lines at EoF are ignored + expected = DataFrame({"a": [1], "b": [2]}) + result = pd.read_excel(path, comment="#") + tm.assert_frame_equal(result, expected) + + def test_datetimes(self, path): + # Test writing and reading datetimes. For issue #9139. (xref #9185) + unit = get_exp_unit(path) + datetimes = [ + datetime(2013, 1, 13, 1, 2, 3), + datetime(2013, 1, 13, 2, 45, 56), + datetime(2013, 1, 13, 4, 29, 49), + datetime(2013, 1, 13, 6, 13, 42), + datetime(2013, 1, 13, 7, 57, 35), + datetime(2013, 1, 13, 9, 41, 28), + datetime(2013, 1, 13, 11, 25, 21), + datetime(2013, 1, 13, 13, 9, 14), + datetime(2013, 1, 13, 14, 53, 7), + datetime(2013, 1, 13, 16, 37, 0), + datetime(2013, 1, 13, 18, 20, 52), + ] + + write_frame = DataFrame({"A": datetimes}) + write_frame.to_excel(path, sheet_name="Sheet1") + read_frame = pd.read_excel(path, sheet_name="Sheet1", header=0) + + expected = write_frame.astype(f"M8[{unit}]") + tm.assert_series_equal(expected["A"], read_frame["A"]) + + def test_bytes_io(self, engine): + # see gh-7074 + with BytesIO() as bio: + df = DataFrame(np.random.default_rng(2).standard_normal((10, 2))) + + # Pass engine explicitly, as there is no file path to infer from. + with ExcelWriter(bio, engine=engine) as writer: + df.to_excel(writer) + + bio.seek(0) + reread_df = pd.read_excel(bio, index_col=0) + tm.assert_frame_equal(df, reread_df) + + def test_engine_kwargs(self, engine, path): + # GH#52368 + df = DataFrame([{"A": 1, "B": 2}, {"A": 3, "B": 4}]) + + msgs = { + "odf": r"OpenDocumentSpreadsheet() got an unexpected keyword " + r"argument 'foo'", + "openpyxl": r"__init__() got an unexpected keyword argument 'foo'", + "xlsxwriter": r"__init__() got an unexpected keyword argument 'foo'", + } + + if PY310: + msgs[ + "openpyxl" + ] = "Workbook.__init__() got an unexpected keyword argument 'foo'" + msgs[ + "xlsxwriter" + ] = "Workbook.__init__() got an unexpected keyword argument 'foo'" + + # Handle change in error message for openpyxl (write and append mode) + if engine == "openpyxl" and not os.path.exists(path): + msgs[ + "openpyxl" + ] = r"load_workbook() got an unexpected keyword argument 'foo'" + + with pytest.raises(TypeError, match=re.escape(msgs[engine])): + df.to_excel( + path, + engine=engine, + engine_kwargs={"foo": "bar"}, + ) + + def test_write_lists_dict(self, path): + # see gh-8188. + df = DataFrame( + { + "mixed": ["a", ["b", "c"], {"d": "e", "f": 2}], + "numeric": [1, 2, 3.0], + "str": ["apple", "banana", "cherry"], + } + ) + df.to_excel(path, sheet_name="Sheet1") + read = pd.read_excel(path, sheet_name="Sheet1", header=0, index_col=0) + + expected = df.copy() + expected.mixed = expected.mixed.apply(str) + expected.numeric = expected.numeric.astype("int64") + + tm.assert_frame_equal(read, expected) + + def test_render_as_column_name(self, path): + # see gh-34331 + df = DataFrame({"render": [1, 2], "data": [3, 4]}) + df.to_excel(path, sheet_name="Sheet1") + read = pd.read_excel(path, "Sheet1", index_col=0) + expected = df + tm.assert_frame_equal(read, expected) + + def test_true_and_false_value_options(self, path): + # see gh-13347 + df = DataFrame([["foo", "bar"]], columns=["col1", "col2"], dtype=object) + with option_context("future.no_silent_downcasting", True): + expected = df.replace({"foo": True, "bar": False}).astype("bool") + + df.to_excel(path) + read_frame = pd.read_excel( + path, true_values=["foo"], false_values=["bar"], index_col=0 + ) + tm.assert_frame_equal(read_frame, expected) + + def test_freeze_panes(self, path): + # see gh-15160 + expected = DataFrame([[1, 2], [3, 4]], columns=["col1", "col2"]) + expected.to_excel(path, sheet_name="Sheet1", freeze_panes=(1, 1)) + + result = pd.read_excel(path, index_col=0) + tm.assert_frame_equal(result, expected) + + def test_path_path_lib(self, engine, ext): + df = DataFrame( + 1.1 * np.arange(120).reshape((30, 4)), + columns=Index(list("ABCD")), + index=Index([f"i-{i}" for i in range(30)]), + ) + writer = partial(df.to_excel, engine=engine) + + reader = partial(pd.read_excel, index_col=0) + result = tm.round_trip_pathlib(writer, reader, path=f"foo{ext}") + tm.assert_frame_equal(result, df) + + def test_path_local_path(self, engine, ext): + df = DataFrame( + 1.1 * np.arange(120).reshape((30, 4)), + columns=Index(list("ABCD")), + index=Index([f"i-{i}" for i in range(30)]), + ) + writer = partial(df.to_excel, engine=engine) + + reader = partial(pd.read_excel, index_col=0) + result = tm.round_trip_localpath(writer, reader, path=f"foo{ext}") + tm.assert_frame_equal(result, df) + + def test_merged_cell_custom_objects(self, path): + # see GH-27006 + mi = MultiIndex.from_tuples( + [ + (pd.Period("2018"), pd.Period("2018Q1")), + (pd.Period("2018"), pd.Period("2018Q2")), + ] + ) + expected = DataFrame(np.ones((2, 2), dtype="int64"), columns=mi) + expected.to_excel(path) + result = pd.read_excel(path, header=[0, 1], index_col=0) + # need to convert PeriodIndexes to standard Indexes for assert equal + expected.columns = expected.columns.set_levels( + [[str(i) for i in mi.levels[0]], [str(i) for i in mi.levels[1]]], + level=[0, 1], + ) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize("dtype", [None, object]) + def test_raise_when_saving_timezones(self, dtype, tz_aware_fixture, path): + # GH 27008, GH 7056 + tz = tz_aware_fixture + data = pd.Timestamp("2019", tz=tz) + df = DataFrame([data], dtype=dtype) + with pytest.raises(ValueError, match="Excel does not support"): + df.to_excel(path) + + data = data.to_pydatetime() + df = DataFrame([data], dtype=dtype) + with pytest.raises(ValueError, match="Excel does not support"): + df.to_excel(path) + + def test_excel_duplicate_columns_with_names(self, path): + # GH#39695 + df = DataFrame({"A": [0, 1], "B": [10, 11]}) + df.to_excel(path, columns=["A", "B", "A"], index=False) + + result = pd.read_excel(path) + expected = DataFrame([[0, 10, 0], [1, 11, 1]], columns=["A", "B", "A.1"]) + tm.assert_frame_equal(result, expected) + + def test_if_sheet_exists_raises(self, ext): + # GH 40230 + msg = "if_sheet_exists is only valid in append mode (mode='a')" + + with tm.ensure_clean(ext) as f: + with pytest.raises(ValueError, match=re.escape(msg)): + ExcelWriter(f, if_sheet_exists="replace") + + def test_excel_writer_empty_frame(self, engine, ext): + # GH#45793 + with tm.ensure_clean(ext) as path: + with ExcelWriter(path, engine=engine) as writer: + DataFrame().to_excel(writer) + result = pd.read_excel(path) + expected = DataFrame() + tm.assert_frame_equal(result, expected) + + def test_to_excel_empty_frame(self, engine, ext): + # GH#45793 + with tm.ensure_clean(ext) as path: + DataFrame().to_excel(path, engine=engine) + result = pd.read_excel(path) + expected = DataFrame() + tm.assert_frame_equal(result, expected) + + +class TestExcelWriterEngineTests: + @pytest.mark.parametrize( + "klass,ext", + [ + pytest.param(_XlsxWriter, ".xlsx", marks=td.skip_if_no("xlsxwriter")), + pytest.param(_OpenpyxlWriter, ".xlsx", marks=td.skip_if_no("openpyxl")), + ], + ) + def test_ExcelWriter_dispatch(self, klass, ext): + with tm.ensure_clean(ext) as path: + with ExcelWriter(path) as writer: + if ext == ".xlsx" and bool( + import_optional_dependency("xlsxwriter", errors="ignore") + ): + # xlsxwriter has preference over openpyxl if both installed + assert isinstance(writer, _XlsxWriter) + else: + assert isinstance(writer, klass) + + def test_ExcelWriter_dispatch_raises(self): + with pytest.raises(ValueError, match="No engine"): + ExcelWriter("nothing") + + def test_register_writer(self): + class DummyClass(ExcelWriter): + called_save = False + called_write_cells = False + called_sheets = False + _supported_extensions = ("xlsx", "xls") + _engine = "dummy" + + def book(self): + pass + + def _save(self): + type(self).called_save = True + + def _write_cells(self, *args, **kwargs): + type(self).called_write_cells = True + + @property + def sheets(self): + type(self).called_sheets = True + + @classmethod + def assert_called_and_reset(cls): + assert cls.called_save + assert cls.called_write_cells + assert not cls.called_sheets + cls.called_save = False + cls.called_write_cells = False + + register_writer(DummyClass) + + with option_context("io.excel.xlsx.writer", "dummy"): + path = "something.xlsx" + with tm.ensure_clean(path) as filepath: + with ExcelWriter(filepath) as writer: + assert isinstance(writer, DummyClass) + df = DataFrame( + ["a"], + columns=Index(["b"], name="foo"), + index=Index(["c"], name="bar"), + ) + df.to_excel(filepath) + DummyClass.assert_called_and_reset() + + with tm.ensure_clean("something.xls") as filepath: + df.to_excel(filepath, engine="dummy") + DummyClass.assert_called_and_reset() + + +@td.skip_if_no("xlrd") +@td.skip_if_no("openpyxl") +class TestFSPath: + def test_excelfile_fspath(self): + with tm.ensure_clean("foo.xlsx") as path: + df = DataFrame({"A": [1, 2]}) + df.to_excel(path) + with ExcelFile(path) as xl: + result = os.fspath(xl) + assert result == path + + def test_excelwriter_fspath(self): + with tm.ensure_clean("foo.xlsx") as path: + with ExcelWriter(path) as writer: + assert os.fspath(writer) == str(path) + + def test_to_excel_pos_args_deprecation(self): + # GH-54229 + df = DataFrame({"a": [1, 2, 3]}) + msg = ( + r"Starting with pandas version 3.0 all arguments of to_excel except " + r"for the argument 'excel_writer' will be keyword-only." + ) + with tm.assert_produces_warning(FutureWarning, match=msg): + buf = BytesIO() + writer = ExcelWriter(buf) + df.to_excel(writer, "Sheet_name_1") + + +@pytest.mark.parametrize("klass", _writers.values()) +def test_subclass_attr(klass): + # testing that subclasses of ExcelWriter don't have public attributes (issue 49602) + attrs_base = {name for name in dir(ExcelWriter) if not name.startswith("_")} + attrs_klass = {name for name in dir(klass) if not name.startswith("_")} + assert not attrs_base.symmetric_difference(attrs_klass) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/excel/test_xlrd.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/excel/test_xlrd.py new file mode 100644 index 0000000000000000000000000000000000000000..066393d91eeadcdc08873f4ffeedda0f689337fe --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/excel/test_xlrd.py @@ -0,0 +1,76 @@ +import io + +import numpy as np +import pytest + +from pandas.compat import is_platform_windows + +import pandas as pd +import pandas._testing as tm + +from pandas.io.excel import ExcelFile +from pandas.io.excel._base import inspect_excel_format + +xlrd = pytest.importorskip("xlrd") + +if is_platform_windows(): + pytestmark = pytest.mark.single_cpu + + +@pytest.fixture(params=[".xls"]) +def read_ext_xlrd(request): + """ + Valid extensions for reading Excel files with xlrd. + + Similar to read_ext, but excludes .ods, .xlsb, and for xlrd>2 .xlsx, .xlsm + """ + return request.param + + +def test_read_xlrd_book(read_ext_xlrd, datapath): + engine = "xlrd" + sheet_name = "Sheet1" + pth = datapath("io", "data", "excel", "test1.xls") + with xlrd.open_workbook(pth) as book: + with ExcelFile(book, engine=engine) as xl: + result = pd.read_excel(xl, sheet_name=sheet_name, index_col=0) + + expected = pd.read_excel( + book, sheet_name=sheet_name, engine=engine, index_col=0 + ) + tm.assert_frame_equal(result, expected) + + +def test_read_xlsx_fails(datapath): + # GH 29375 + from xlrd.biffh import XLRDError + + path = datapath("io", "data", "excel", "test1.xlsx") + with pytest.raises(XLRDError, match="Excel xlsx file; not supported"): + pd.read_excel(path, engine="xlrd") + + +def test_nan_in_xls(datapath): + # GH 54564 + path = datapath("io", "data", "excel", "test6.xls") + + expected = pd.DataFrame({0: np.r_[0, 2].astype("int64"), 1: np.r_[1, np.nan]}) + + result = pd.read_excel(path, header=None) + + tm.assert_frame_equal(result, expected) + + +@pytest.mark.parametrize( + "file_header", + [ + b"\x09\x00\x04\x00\x07\x00\x10\x00", + b"\x09\x02\x06\x00\x00\x00\x10\x00", + b"\x09\x04\x06\x00\x00\x00\x10\x00", + b"\xd0\xcf\x11\xe0\xa1\xb1\x1a\xe1", + ], +) +def test_read_old_xls_files(file_header): + # GH 41226 + f = io.BytesIO(file_header) + assert inspect_excel_format(f) == "xls" diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/excel/test_xlsxwriter.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/excel/test_xlsxwriter.py new file mode 100644 index 0000000000000000000000000000000000000000..529367761fc025e3e5d02bea85741c82f64c97ca --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/excel/test_xlsxwriter.py @@ -0,0 +1,86 @@ +import contextlib + +import pytest + +from pandas.compat import is_platform_windows + +from pandas import DataFrame +import pandas._testing as tm + +from pandas.io.excel import ExcelWriter + +xlsxwriter = pytest.importorskip("xlsxwriter") + +if is_platform_windows(): + pytestmark = pytest.mark.single_cpu + + +@pytest.fixture +def ext(): + return ".xlsx" + + +def test_column_format(ext): + # Test that column formats are applied to cells. Test for issue #9167. + # Applicable to xlsxwriter only. + openpyxl = pytest.importorskip("openpyxl") + + with tm.ensure_clean(ext) as path: + frame = DataFrame({"A": [123456, 123456], "B": [123456, 123456]}) + + with ExcelWriter(path) as writer: + frame.to_excel(writer) + + # Add a number format to col B and ensure it is applied to cells. + num_format = "#,##0" + write_workbook = writer.book + write_worksheet = write_workbook.worksheets()[0] + col_format = write_workbook.add_format({"num_format": num_format}) + write_worksheet.set_column("B:B", None, col_format) + + with contextlib.closing(openpyxl.load_workbook(path)) as read_workbook: + try: + read_worksheet = read_workbook["Sheet1"] + except TypeError: + # compat + read_worksheet = read_workbook.get_sheet_by_name(name="Sheet1") + + # Get the number format from the cell. + try: + cell = read_worksheet["B2"] + except TypeError: + # compat + cell = read_worksheet.cell("B2") + + try: + read_num_format = cell.number_format + except AttributeError: + read_num_format = cell.style.number_format._format_code + + assert read_num_format == num_format + + +def test_write_append_mode_raises(ext): + msg = "Append mode is not supported with xlsxwriter!" + + with tm.ensure_clean(ext) as f: + with pytest.raises(ValueError, match=msg): + ExcelWriter(f, engine="xlsxwriter", mode="a") + + +@pytest.mark.parametrize("nan_inf_to_errors", [True, False]) +def test_engine_kwargs(ext, nan_inf_to_errors): + # GH 42286 + engine_kwargs = {"options": {"nan_inf_to_errors": nan_inf_to_errors}} + with tm.ensure_clean(ext) as f: + with ExcelWriter(f, engine="xlsxwriter", engine_kwargs=engine_kwargs) as writer: + assert writer.book.nan_inf_to_errors == nan_inf_to_errors + + +def test_book_and_sheets_consistent(ext): + # GH#45687 - Ensure sheets is updated if user modifies book + with tm.ensure_clean(ext) as f: + with ExcelWriter(f, engine="xlsxwriter") as writer: + assert writer.sheets == {} + sheet = writer.book.add_worksheet("test_name") + assert writer.sheets == {"test_name": sheet} diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/__init__.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/test_bar.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/test_bar.py new file mode 100644 index 0000000000000000000000000000000000000000..d28c7c566d851f16f81cdc04f22e04ca8bde2c71 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/test_bar.py @@ -0,0 +1,359 @@ +import io + +import numpy as np +import pytest + +from pandas import ( + NA, + DataFrame, + read_csv, +) + +pytest.importorskip("jinja2") + + +def bar_grad(a=None, b=None, c=None, d=None): + """Used in multiple tests to simplify formatting of expected result""" + ret = [("width", "10em")] + if all(x is None for x in [a, b, c, d]): + return ret + return ret + [ + ( + "background", + f"linear-gradient(90deg,{','.join([x for x in [a, b, c, d] if x])})", + ) + ] + + +def no_bar(): + return bar_grad() + + +def bar_to(x, color="#d65f5f"): + return bar_grad(f" {color} {x:.1f}%", f" transparent {x:.1f}%") + + +def bar_from_to(x, y, color="#d65f5f"): + return bar_grad( + f" transparent {x:.1f}%", + f" {color} {x:.1f}%", + f" {color} {y:.1f}%", + f" transparent {y:.1f}%", + ) + + +@pytest.fixture +def df_pos(): + return DataFrame([[1], [2], [3]]) + + +@pytest.fixture +def df_neg(): + return DataFrame([[-1], [-2], [-3]]) + + +@pytest.fixture +def df_mix(): + return DataFrame([[-3], [1], [2]]) + + +@pytest.mark.parametrize( + "align, exp", + [ + ("left", [no_bar(), bar_to(50), bar_to(100)]), + ("right", [bar_to(100), bar_from_to(50, 100), no_bar()]), + ("mid", [bar_to(33.33), bar_to(66.66), bar_to(100)]), + ("zero", [bar_from_to(50, 66.7), bar_from_to(50, 83.3), bar_from_to(50, 100)]), + ("mean", [bar_to(50), no_bar(), bar_from_to(50, 100)]), + (2.0, [bar_to(50), no_bar(), bar_from_to(50, 100)]), + (np.median, [bar_to(50), no_bar(), bar_from_to(50, 100)]), + ], +) +def test_align_positive_cases(df_pos, align, exp): + # test different align cases for all positive values + result = df_pos.style.bar(align=align)._compute().ctx + expected = {(0, 0): exp[0], (1, 0): exp[1], (2, 0): exp[2]} + assert result == expected + + +@pytest.mark.parametrize( + "align, exp", + [ + ("left", [bar_to(100), bar_to(50), no_bar()]), + ("right", [no_bar(), bar_from_to(50, 100), bar_to(100)]), + ("mid", [bar_from_to(66.66, 100), bar_from_to(33.33, 100), bar_to(100)]), + ("zero", [bar_from_to(33.33, 50), bar_from_to(16.66, 50), bar_to(50)]), + ("mean", [bar_from_to(50, 100), no_bar(), bar_to(50)]), + (-2.0, [bar_from_to(50, 100), no_bar(), bar_to(50)]), + (np.median, [bar_from_to(50, 100), no_bar(), bar_to(50)]), + ], +) +def test_align_negative_cases(df_neg, align, exp): + # test different align cases for all negative values + result = df_neg.style.bar(align=align)._compute().ctx + expected = {(0, 0): exp[0], (1, 0): exp[1], (2, 0): exp[2]} + assert result == expected + + +@pytest.mark.parametrize( + "align, exp", + [ + ("left", [no_bar(), bar_to(80), bar_to(100)]), + ("right", [bar_to(100), bar_from_to(80, 100), no_bar()]), + ("mid", [bar_to(60), bar_from_to(60, 80), bar_from_to(60, 100)]), + ("zero", [bar_to(50), bar_from_to(50, 66.66), bar_from_to(50, 83.33)]), + ("mean", [bar_to(50), bar_from_to(50, 66.66), bar_from_to(50, 83.33)]), + (-0.0, [bar_to(50), bar_from_to(50, 66.66), bar_from_to(50, 83.33)]), + (np.nanmedian, [bar_to(50), no_bar(), bar_from_to(50, 62.5)]), + ], +) +@pytest.mark.parametrize("nans", [True, False]) +def test_align_mixed_cases(df_mix, align, exp, nans): + # test different align cases for mixed positive and negative values + # also test no impact of NaNs and no_bar + expected = {(0, 0): exp[0], (1, 0): exp[1], (2, 0): exp[2]} + if nans: + df_mix.loc[3, :] = np.nan + expected.update({(3, 0): no_bar()}) + result = df_mix.style.bar(align=align)._compute().ctx + assert result == expected + + +@pytest.mark.parametrize( + "align, exp", + [ + ( + "left", + { + "index": [[no_bar(), no_bar()], [bar_to(100), bar_to(100)]], + "columns": [[no_bar(), bar_to(100)], [no_bar(), bar_to(100)]], + "none": [[no_bar(), bar_to(33.33)], [bar_to(66.66), bar_to(100)]], + }, + ), + ( + "mid", + { + "index": [[bar_to(33.33), bar_to(50)], [bar_to(100), bar_to(100)]], + "columns": [[bar_to(50), bar_to(100)], [bar_to(75), bar_to(100)]], + "none": [[bar_to(25), bar_to(50)], [bar_to(75), bar_to(100)]], + }, + ), + ( + "zero", + { + "index": [ + [bar_from_to(50, 66.66), bar_from_to(50, 75)], + [bar_from_to(50, 100), bar_from_to(50, 100)], + ], + "columns": [ + [bar_from_to(50, 75), bar_from_to(50, 100)], + [bar_from_to(50, 87.5), bar_from_to(50, 100)], + ], + "none": [ + [bar_from_to(50, 62.5), bar_from_to(50, 75)], + [bar_from_to(50, 87.5), bar_from_to(50, 100)], + ], + }, + ), + ( + 2, + { + "index": [ + [bar_to(50), no_bar()], + [bar_from_to(50, 100), bar_from_to(50, 100)], + ], + "columns": [ + [bar_to(50), no_bar()], + [bar_from_to(50, 75), bar_from_to(50, 100)], + ], + "none": [ + [bar_from_to(25, 50), no_bar()], + [bar_from_to(50, 75), bar_from_to(50, 100)], + ], + }, + ), + ], +) +@pytest.mark.parametrize("axis", ["index", "columns", "none"]) +def test_align_axis(align, exp, axis): + # test all axis combinations with positive values and different aligns + data = DataFrame([[1, 2], [3, 4]]) + result = ( + data.style.bar(align=align, axis=None if axis == "none" else axis) + ._compute() + .ctx + ) + expected = { + (0, 0): exp[axis][0][0], + (0, 1): exp[axis][0][1], + (1, 0): exp[axis][1][0], + (1, 1): exp[axis][1][1], + } + assert result == expected + + +@pytest.mark.parametrize( + "values, vmin, vmax", + [ + ("positive", 1.5, 2.5), + ("negative", -2.5, -1.5), + ("mixed", -2.5, 1.5), + ], +) +@pytest.mark.parametrize("nullify", [None, "vmin", "vmax"]) # test min/max separately +@pytest.mark.parametrize("align", ["left", "right", "zero", "mid"]) +def test_vmin_vmax_clipping(df_pos, df_neg, df_mix, values, vmin, vmax, nullify, align): + # test that clipping occurs if any vmin > data_values or vmax < data_values + if align == "mid": # mid acts as left or right in each case + if values == "positive": + align = "left" + elif values == "negative": + align = "right" + df = {"positive": df_pos, "negative": df_neg, "mixed": df_mix}[values] + vmin = None if nullify == "vmin" else vmin + vmax = None if nullify == "vmax" else vmax + + clip_df = df.where(df <= (vmax if vmax else 999), other=vmax) + clip_df = clip_df.where(clip_df >= (vmin if vmin else -999), other=vmin) + + result = ( + df.style.bar(align=align, vmin=vmin, vmax=vmax, color=["red", "green"]) + ._compute() + .ctx + ) + expected = clip_df.style.bar(align=align, color=["red", "green"])._compute().ctx + assert result == expected + + +@pytest.mark.parametrize( + "values, vmin, vmax", + [ + ("positive", 0.5, 4.5), + ("negative", -4.5, -0.5), + ("mixed", -4.5, 4.5), + ], +) +@pytest.mark.parametrize("nullify", [None, "vmin", "vmax"]) # test min/max separately +@pytest.mark.parametrize("align", ["left", "right", "zero", "mid"]) +def test_vmin_vmax_widening(df_pos, df_neg, df_mix, values, vmin, vmax, nullify, align): + # test that widening occurs if any vmax > data_values or vmin < data_values + if align == "mid": # mid acts as left or right in each case + if values == "positive": + align = "left" + elif values == "negative": + align = "right" + df = {"positive": df_pos, "negative": df_neg, "mixed": df_mix}[values] + vmin = None if nullify == "vmin" else vmin + vmax = None if nullify == "vmax" else vmax + + expand_df = df.copy() + expand_df.loc[3, :], expand_df.loc[4, :] = vmin, vmax + + result = ( + df.style.bar(align=align, vmin=vmin, vmax=vmax, color=["red", "green"]) + ._compute() + .ctx + ) + expected = expand_df.style.bar(align=align, color=["red", "green"])._compute().ctx + assert result.items() <= expected.items() + + +def test_numerics(): + # test data is pre-selected for numeric values + data = DataFrame([[1, "a"], [2, "b"]]) + result = data.style.bar()._compute().ctx + assert (0, 1) not in result + assert (1, 1) not in result + + +@pytest.mark.parametrize( + "align, exp", + [ + ("left", [no_bar(), bar_to(100, "green")]), + ("right", [bar_to(100, "red"), no_bar()]), + ("mid", [bar_to(25, "red"), bar_from_to(25, 100, "green")]), + ("zero", [bar_from_to(33.33, 50, "red"), bar_from_to(50, 100, "green")]), + ], +) +def test_colors_mixed(align, exp): + data = DataFrame([[-1], [3]]) + result = data.style.bar(align=align, color=["red", "green"])._compute().ctx + assert result == {(0, 0): exp[0], (1, 0): exp[1]} + + +def test_bar_align_height(): + # test when keyword height is used 'no-repeat center' and 'background-size' present + data = DataFrame([[1], [2]]) + result = data.style.bar(align="left", height=50)._compute().ctx + bg_s = "linear-gradient(90deg, #d65f5f 100.0%, transparent 100.0%) no-repeat center" + expected = { + (0, 0): [("width", "10em")], + (1, 0): [ + ("width", "10em"), + ("background", bg_s), + ("background-size", "100% 50.0%"), + ], + } + assert result == expected + + +def test_bar_value_error_raises(): + df = DataFrame({"A": [-100, -60, -30, -20]}) + + msg = "`align` should be in {'left', 'right', 'mid', 'mean', 'zero'} or" + with pytest.raises(ValueError, match=msg): + df.style.bar(align="poorly", color=["#d65f5f", "#5fba7d"]).to_html() + + msg = r"`width` must be a value in \[0, 100\]" + with pytest.raises(ValueError, match=msg): + df.style.bar(width=200).to_html() + + msg = r"`height` must be a value in \[0, 100\]" + with pytest.raises(ValueError, match=msg): + df.style.bar(height=200).to_html() + + +def test_bar_color_and_cmap_error_raises(): + df = DataFrame({"A": [1, 2, 3, 4]}) + msg = "`color` and `cmap` cannot both be given" + # Test that providing both color and cmap raises a ValueError + with pytest.raises(ValueError, match=msg): + df.style.bar(color="#d65f5f", cmap="viridis").to_html() + + +def test_bar_invalid_color_type_error_raises(): + df = DataFrame({"A": [1, 2, 3, 4]}) + msg = ( + r"`color` must be string or list or tuple of 2 strings," + r"\(eg: color=\['#d65f5f', '#5fba7d'\]\)" + ) + # Test that providing an invalid color type raises a ValueError + with pytest.raises(ValueError, match=msg): + df.style.bar(color=123).to_html() + + # Test that providing a color list with more than two elements raises a ValueError + with pytest.raises(ValueError, match=msg): + df.style.bar(color=["#d65f5f", "#5fba7d", "#abcdef"]).to_html() + + +def test_styler_bar_with_NA_values(): + df1 = DataFrame({"A": [1, 2, NA, 4]}) + df2 = DataFrame([[NA, NA], [NA, NA]]) + expected_substring = "style type=" + html_output1 = df1.style.bar(subset="A").to_html() + html_output2 = df2.style.bar(align="left", axis=None).to_html() + assert expected_substring in html_output1 + assert expected_substring in html_output2 + + +def test_style_bar_with_pyarrow_NA_values(): + pytest.importorskip("pyarrow") + data = """name,age,test1,test2,teacher + Adam,15,95.0,80,Ashby + Bob,16,81.0,82,Ashby + Dave,16,89.0,84,Jones + Fred,15,,88,Jones""" + df = read_csv(io.StringIO(data), dtype_backend="pyarrow") + expected_substring = "style type=" + html_output = df.style.bar(subset="test1").to_html() + assert expected_substring in html_output diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/test_exceptions.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/test_exceptions.py new file mode 100644 index 0000000000000000000000000000000000000000..d52e3a37e7693dadce34f73fc03a0790c7a0b4d3 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/test_exceptions.py @@ -0,0 +1,44 @@ +import pytest + +jinja2 = pytest.importorskip("jinja2") + +from pandas import ( + DataFrame, + MultiIndex, +) + +from pandas.io.formats.style import Styler + + +@pytest.fixture +def df(): + return DataFrame( + data=[[0, -0.609], [1, -1.228]], + columns=["A", "B"], + index=["x", "y"], + ) + + +@pytest.fixture +def styler(df): + return Styler(df, uuid_len=0) + + +def test_concat_bad_columns(styler): + msg = "`other.data` must have same columns as `Styler.data" + with pytest.raises(ValueError, match=msg): + styler.concat(DataFrame([[1, 2]]).style) + + +def test_concat_bad_type(styler): + msg = "`other` must be of type `Styler`" + with pytest.raises(TypeError, match=msg): + styler.concat(DataFrame([[1, 2]])) + + +def test_concat_bad_index_levels(styler, df): + df = df.copy() + df.index = MultiIndex.from_tuples([(0, 0), (1, 1)]) + msg = "number of index levels must be same in `other`" + with pytest.raises(ValueError, match=msg): + styler.concat(df.style) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/test_format.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/test_format.py new file mode 100644 index 0000000000000000000000000000000000000000..1c84816ead140b95f14df8dbeccc83b317ac239a --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/test_format.py @@ -0,0 +1,562 @@ +import numpy as np +import pytest + +from pandas import ( + NA, + DataFrame, + IndexSlice, + MultiIndex, + NaT, + Timestamp, + option_context, +) + +pytest.importorskip("jinja2") +from pandas.io.formats.style import Styler +from pandas.io.formats.style_render import _str_escape + + +@pytest.fixture +def df(): + return DataFrame( + data=[[0, -0.609], [1, -1.228]], + columns=["A", "B"], + index=["x", "y"], + ) + + +@pytest.fixture +def styler(df): + return Styler(df, uuid_len=0) + + +@pytest.fixture +def df_multi(): + return DataFrame( + data=np.arange(16).reshape(4, 4), + columns=MultiIndex.from_product([["A", "B"], ["a", "b"]]), + index=MultiIndex.from_product([["X", "Y"], ["x", "y"]]), + ) + + +@pytest.fixture +def styler_multi(df_multi): + return Styler(df_multi, uuid_len=0) + + +def test_display_format(styler): + ctx = styler.format("{:0.1f}")._translate(True, True) + assert all(["display_value" in c for c in row] for row in ctx["body"]) + assert all([len(c["display_value"]) <= 3 for c in row[1:]] for row in ctx["body"]) + assert len(ctx["body"][0][1]["display_value"].lstrip("-")) <= 3 + + +@pytest.mark.parametrize("index", [True, False]) +@pytest.mark.parametrize("columns", [True, False]) +def test_display_format_index(styler, index, columns): + exp_index = ["x", "y"] + if index: + styler.format_index(lambda v: v.upper(), axis=0) # test callable + exp_index = ["X", "Y"] + + exp_columns = ["A", "B"] + if columns: + styler.format_index("*{}*", axis=1) # test string + exp_columns = ["*A*", "*B*"] + + ctx = styler._translate(True, True) + + for r, row in enumerate(ctx["body"]): + assert row[0]["display_value"] == exp_index[r] + + for c, col in enumerate(ctx["head"][1:]): + assert col["display_value"] == exp_columns[c] + + +def test_format_dict(styler): + ctx = styler.format({"A": "{:0.1f}", "B": "{0:.2%}"})._translate(True, True) + assert ctx["body"][0][1]["display_value"] == "0.0" + assert ctx["body"][0][2]["display_value"] == "-60.90%" + + +def test_format_index_dict(styler): + ctx = styler.format_index({0: lambda v: v.upper()})._translate(True, True) + for i, val in enumerate(["X", "Y"]): + assert ctx["body"][i][0]["display_value"] == val + + +def test_format_string(styler): + ctx = styler.format("{:.2f}")._translate(True, True) + assert ctx["body"][0][1]["display_value"] == "0.00" + assert ctx["body"][0][2]["display_value"] == "-0.61" + assert ctx["body"][1][1]["display_value"] == "1.00" + assert ctx["body"][1][2]["display_value"] == "-1.23" + + +def test_format_callable(styler): + ctx = styler.format(lambda v: "neg" if v < 0 else "pos")._translate(True, True) + assert ctx["body"][0][1]["display_value"] == "pos" + assert ctx["body"][0][2]["display_value"] == "neg" + assert ctx["body"][1][1]["display_value"] == "pos" + assert ctx["body"][1][2]["display_value"] == "neg" + + +def test_format_with_na_rep(): + # GH 21527 28358 + df = DataFrame([[None, None], [1.1, 1.2]], columns=["A", "B"]) + + ctx = df.style.format(None, na_rep="-")._translate(True, True) + assert ctx["body"][0][1]["display_value"] == "-" + assert ctx["body"][0][2]["display_value"] == "-" + + ctx = df.style.format("{:.2%}", na_rep="-")._translate(True, True) + assert ctx["body"][0][1]["display_value"] == "-" + assert ctx["body"][0][2]["display_value"] == "-" + assert ctx["body"][1][1]["display_value"] == "110.00%" + assert ctx["body"][1][2]["display_value"] == "120.00%" + + ctx = df.style.format("{:.2%}", na_rep="-", subset=["B"])._translate(True, True) + assert ctx["body"][0][2]["display_value"] == "-" + assert ctx["body"][1][2]["display_value"] == "120.00%" + + +def test_format_index_with_na_rep(): + df = DataFrame([[1, 2, 3, 4, 5]], columns=["A", None, np.nan, NaT, NA]) + ctx = df.style.format_index(None, na_rep="--", axis=1)._translate(True, True) + assert ctx["head"][0][1]["display_value"] == "A" + for i in [2, 3, 4, 5]: + assert ctx["head"][0][i]["display_value"] == "--" + + +def test_format_non_numeric_na(): + # GH 21527 28358 + df = DataFrame( + { + "object": [None, np.nan, "foo"], + "datetime": [None, NaT, Timestamp("20120101")], + } + ) + ctx = df.style.format(None, na_rep="-")._translate(True, True) + assert ctx["body"][0][1]["display_value"] == "-" + assert ctx["body"][0][2]["display_value"] == "-" + assert ctx["body"][1][1]["display_value"] == "-" + assert ctx["body"][1][2]["display_value"] == "-" + + +@pytest.mark.parametrize( + "func, attr, kwargs", + [ + ("format", "_display_funcs", {}), + ("format_index", "_display_funcs_index", {"axis": 0}), + ("format_index", "_display_funcs_columns", {"axis": 1}), + ], +) +def test_format_clear(styler, func, attr, kwargs): + assert (0, 0) not in getattr(styler, attr) # using default + getattr(styler, func)("{:.2f}", **kwargs) + assert (0, 0) in getattr(styler, attr) # formatter is specified + getattr(styler, func)(**kwargs) + assert (0, 0) not in getattr(styler, attr) # formatter cleared to default + + +@pytest.mark.parametrize( + "escape, exp", + [ + ("html", "<>&"%$#_{}~^\\~ ^ \\ "), + ( + "latex", + '<>\\&"\\%\\$\\#\\_\\{\\}\\textasciitilde \\textasciicircum ' + "\\textbackslash \\textasciitilde \\space \\textasciicircum \\space " + "\\textbackslash \\space ", + ), + ], +) +def test_format_escape_html(escape, exp): + chars = '<>&"%$#_{}~^\\~ ^ \\ ' + df = DataFrame([[chars]]) + + s = Styler(df, uuid_len=0).format("&{0}&", escape=None) + expected = f'
&{chars}&&{exp}&X&<>&">X&
+ + + + + + + + + + + + + + + + +
 A
a2.610000
b2.690000
+ + + """ + ) + assert result == expected + + +def test_w3_html_format(styler): + styler.set_uuid("").set_table_styles([{"selector": "th", "props": "att2:v2;"}]).map( + lambda x: "att1:v1;" + ).set_table_attributes('class="my-cls1" style="attr3:v3;"').set_td_classes( + DataFrame(["my-cls2"], index=["a"], columns=["A"]) + ).format( + "{:.1f}" + ).set_caption( + "A comprehensive test" + ) + expected = dedent( + """\ + + + + + + + + + + + + + + + + + + + +
A comprehensive test
 A
a2.6
b2.7
+ """ + ) + assert expected == styler.to_html() + + +def test_colspan_w3(): + # GH 36223 + df = DataFrame(data=[[1, 2]], columns=[["l0", "l0"], ["l1a", "l1b"]]) + styler = Styler(df, uuid="_", cell_ids=False) + assert '
l0l0
+ + + + + + + + + + + + + + + + +
 A
a2.610000
b2.690000
+ + + """ + ) + assert result == expected + + +def test_doctype(styler): + result = styler.to_html(doctype_html=False) + assert "" not in result + assert "" not in result + assert "" not in result + assert "" not in result + + +def test_doctype_encoding(styler): + with option_context("styler.render.encoding", "ASCII"): + result = styler.to_html(doctype_html=True) + assert '' in result + result = styler.to_html(doctype_html=True, encoding="ANSI") + assert '' in result + + +def test_bold_headers_arg(styler): + result = styler.to_html(bold_headers=True) + assert "th {\n font-weight: bold;\n}" in result + result = styler.to_html() + assert "th {\n font-weight: bold;\n}" not in result + + +def test_caption_arg(styler): + result = styler.to_html(caption="foo bar") + assert "
foo barfoo bar
2.6100002.690000abA
+ + + + + + + + + + + + + + + + + + + + + + + + +
 n1a
 n2c
n1n2 
ac0
+ """ + ) + result = styler_mi.to_html() + assert result == expected + + +def test_include_css_style_rules_only_for_visible_cells(styler_mi): + # GH 43619 + result = ( + styler_mi.set_uuid("") + .map(lambda v: "color: blue;") + .hide(styler_mi.data.columns[1:], axis="columns") + .hide(styler_mi.data.index[1:], axis="index") + .to_html() + ) + expected_styles = dedent( + """\ + + """ + ) + assert expected_styles in result + + +def test_include_css_style_rules_only_for_visible_index_labels(styler_mi): + # GH 43619 + result = ( + styler_mi.set_uuid("") + .map_index(lambda v: "color: blue;", axis="index") + .hide(styler_mi.data.columns, axis="columns") + .hide(styler_mi.data.index[1:], axis="index") + .to_html() + ) + expected_styles = dedent( + """\ + + """ + ) + assert expected_styles in result + + +def test_include_css_style_rules_only_for_visible_column_labels(styler_mi): + # GH 43619 + result = ( + styler_mi.set_uuid("") + .map_index(lambda v: "color: blue;", axis="columns") + .hide(styler_mi.data.columns[1:], axis="columns") + .hide(styler_mi.data.index, axis="index") + .to_html() + ) + expected_styles = dedent( + """\ + + """ + ) + assert expected_styles in result + + +def test_hiding_index_columns_multiindex_alignment(): + # gh 43644 + midx = MultiIndex.from_product( + [["i0", "j0"], ["i1"], ["i2", "j2"]], names=["i-0", "i-1", "i-2"] + ) + cidx = MultiIndex.from_product( + [["c0"], ["c1", "d1"], ["c2", "d2"]], names=["c-0", "c-1", "c-2"] + ) + df = DataFrame(np.arange(16).reshape(4, 4), index=midx, columns=cidx) + styler = Styler(df, uuid_len=0) + styler.hide(level=1, axis=0).hide(level=0, axis=1) + styler.hide([("j0", "i1", "j2")], axis=0) + styler.hide([("c0", "d1", "d2")], axis=1) + result = styler.to_html() + expected = dedent( + """\ + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + +
 c-1c1d1
 c-2c2d2c2
i-0i-2   
i0i2012
j2456
j0i28910
+ """ + ) + assert result == expected + + +def test_hiding_index_columns_multiindex_trimming(): + # gh 44272 + df = DataFrame(np.arange(64).reshape(8, 8)) + df.columns = MultiIndex.from_product([[0, 1, 2, 3], [0, 1]]) + df.index = MultiIndex.from_product([[0, 1, 2, 3], [0, 1]]) + df.index.names, df.columns.names = ["a", "b"], ["c", "d"] + styler = Styler(df, cell_ids=False, uuid_len=0) + styler.hide([(0, 0), (0, 1), (1, 0)], axis=1).hide([(0, 0), (0, 1), (1, 0)], axis=0) + with option_context("styler.render.max_rows", 4, "styler.render.max_columns", 4): + result = styler.to_html() + + expected = dedent( + """\ + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + +
 c123
 d1010...
ab     
1127282930...
2035363738...
143444546...
3051525354...
.....................
+ """ + ) + + assert result == expected + + +@pytest.mark.parametrize("type", ["data", "index"]) +@pytest.mark.parametrize( + "text, exp, found", + [ + ("no link, just text", False, ""), + ("subdomain not www: sub.web.com", False, ""), + ("www subdomain: www.web.com other", True, "www.web.com"), + ("scheme full structure: http://www.web.com", True, "http://www.web.com"), + ("scheme no top-level: http://www.web", True, "http://www.web"), + ("no scheme, no top-level: www.web", False, "www.web"), + ("https scheme: https://www.web.com", True, "https://www.web.com"), + ("ftp scheme: ftp://www.web", True, "ftp://www.web"), + ("ftps scheme: ftps://www.web", True, "ftps://www.web"), + ("subdirectories: www.web.com/directory", True, "www.web.com/directory"), + ("Multiple domains: www.1.2.3.4", True, "www.1.2.3.4"), + ("with port: http://web.com:80", True, "http://web.com:80"), + ( + "full net_loc scheme: http://user:pass@web.com", + True, + "http://user:pass@web.com", + ), + ( + "with valid special chars: http://web.com/,.':;~!@#$*()[]", + True, + "http://web.com/,.':;~!@#$*()[]", + ), + ], +) +def test_rendered_links(type, text, exp, found): + if type == "data": + df = DataFrame([text]) + styler = df.style.format(hyperlinks="html") + else: + df = DataFrame([0], index=[text]) + styler = df.style.format_index(hyperlinks="html") + + rendered = f'{found}' + result = styler.to_html() + assert (rendered in result) is exp + assert (text in result) is not exp # test conversion done when expected and not + + +def test_multiple_rendered_links(): + links = ("www.a.b", "http://a.c", "https://a.d", "ftp://a.e") + # pylint: disable-next=consider-using-f-string + df = DataFrame(["text {} {} text {} {}".format(*links)]) + result = df.style.format(hyperlinks="html").to_html() + href = '{0}' + for link in links: + assert href.format(link) in result + assert href.format("text") not in result + + +def test_concat(styler): + other = styler.data.agg(["mean"]).style + styler.concat(other).set_uuid("X") + result = styler.to_html() + fp = "foot0_" + expected = dedent( + f"""\ + + b + 2.690000 + + + mean + 2.650000 + + + + """ + ) + assert expected in result + + +def test_concat_recursion(styler): + df = styler.data + styler1 = styler + styler2 = Styler(df.agg(["mean"]), precision=3) + styler3 = Styler(df.agg(["mean"]), precision=4) + styler1.concat(styler2.concat(styler3)).set_uuid("X") + result = styler.to_html() + # notice that the second concat (last of the output html), + # there are two `foot_` in the id and class + fp1 = "foot0_" + fp2 = "foot0_foot0_" + expected = dedent( + f"""\ + + b + 2.690000 + + + mean + 2.650 + + + mean + 2.6500 + + + + """ + ) + assert expected in result + + +def test_concat_chain(styler): + df = styler.data + styler1 = styler + styler2 = Styler(df.agg(["mean"]), precision=3) + styler3 = Styler(df.agg(["mean"]), precision=4) + styler1.concat(styler2).concat(styler3).set_uuid("X") + result = styler.to_html() + fp1 = "foot0_" + fp2 = "foot1_" + expected = dedent( + f"""\ + + b + 2.690000 + + + mean + 2.650 + + + mean + 2.6500 + + + + """ + ) + assert expected in result + + +def test_concat_combined(): + def html_lines(foot_prefix: str): + assert foot_prefix.endswith("_") or foot_prefix == "" + fp = foot_prefix + return indent( + dedent( + f"""\ + + a + 2.610000 + + + b + 2.690000 + + """ + ), + prefix=" " * 4, + ) + + df = DataFrame([[2.61], [2.69]], index=["a", "b"], columns=["A"]) + s1 = df.style.highlight_max(color="red") + s2 = df.style.highlight_max(color="green") + s3 = df.style.highlight_max(color="blue") + s4 = df.style.highlight_max(color="yellow") + + result = s1.concat(s2).concat(s3.concat(s4)).set_uuid("X").to_html() + expected_css = dedent( + """\ + + """ + ) + expected_table = ( + dedent( + """\ + + + + + + + + + """ + ) + + html_lines("") + + html_lines("foot0_") + + html_lines("foot1_") + + html_lines("foot1_foot0_") + + dedent( + """\ + +
 A
+ """ + ) + ) + assert expected_css + expected_table == result + + +def test_to_html_na_rep_non_scalar_data(datapath): + # GH47103 + df = DataFrame([{"a": 1, "b": [1, 2, 3], "c": np.nan}]) + result = df.style.format(na_rep="-").to_html(table_uuid="test") + expected = """\ + + + + + + + + + + + + + + + + + + +
 abc
01[1, 2, 3]-
+""" + assert result == expected diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/test_matplotlib.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/test_matplotlib.py new file mode 100644 index 0000000000000000000000000000000000000000..fb7a77f1ddb27db66a847fc1a1d87d14d95822aa --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/test_matplotlib.py @@ -0,0 +1,335 @@ +import gc + +import numpy as np +import pytest + +from pandas import ( + DataFrame, + IndexSlice, + Series, +) + +pytest.importorskip("matplotlib") +pytest.importorskip("jinja2") + +import matplotlib as mpl + +from pandas.io.formats.style import Styler + + +@pytest.fixture(autouse=True) +def mpl_cleanup(): + # matplotlib/testing/decorators.py#L24 + # 1) Resets units registry + # 2) Resets rc_context + # 3) Closes all figures + mpl = pytest.importorskip("matplotlib") + mpl_units = pytest.importorskip("matplotlib.units") + plt = pytest.importorskip("matplotlib.pyplot") + orig_units_registry = mpl_units.registry.copy() + with mpl.rc_context(): + mpl.use("template") + yield + mpl_units.registry.clear() + mpl_units.registry.update(orig_units_registry) + plt.close("all") + # https://matplotlib.org/stable/users/prev_whats_new/whats_new_3.6.0.html#garbage-collection-is-no-longer-run-on-figure-close # noqa: E501 + gc.collect(1) + + +@pytest.fixture +def df(): + return DataFrame([[1, 2], [2, 4]], columns=["A", "B"]) + + +@pytest.fixture +def styler(df): + return Styler(df, uuid_len=0) + + +@pytest.fixture +def df_blank(): + return DataFrame([[0, 0], [0, 0]], columns=["A", "B"], index=["X", "Y"]) + + +@pytest.fixture +def styler_blank(df_blank): + return Styler(df_blank, uuid_len=0) + + +@pytest.mark.parametrize("f", ["background_gradient", "text_gradient"]) +def test_function_gradient(styler, f): + for c_map in [None, "YlOrRd"]: + result = getattr(styler, f)(cmap=c_map)._compute().ctx + assert all("#" in x[0][1] for x in result.values()) + assert result[(0, 0)] == result[(0, 1)] + assert result[(1, 0)] == result[(1, 1)] + + +@pytest.mark.parametrize("f", ["background_gradient", "text_gradient"]) +def test_background_gradient_color(styler, f): + result = getattr(styler, f)(subset=IndexSlice[1, "A"])._compute().ctx + if f == "background_gradient": + assert result[(1, 0)] == [("background-color", "#fff7fb"), ("color", "#000000")] + elif f == "text_gradient": + assert result[(1, 0)] == [("color", "#fff7fb")] + + +@pytest.mark.parametrize( + "axis, expected", + [ + (0, ["low", "low", "high", "high"]), + (1, ["low", "high", "low", "high"]), + (None, ["low", "mid", "mid", "high"]), + ], +) +@pytest.mark.parametrize("f", ["background_gradient", "text_gradient"]) +def test_background_gradient_axis(styler, axis, expected, f): + if f == "background_gradient": + colors = { + "low": [("background-color", "#f7fbff"), ("color", "#000000")], + "mid": [("background-color", "#abd0e6"), ("color", "#000000")], + "high": [("background-color", "#08306b"), ("color", "#f1f1f1")], + } + elif f == "text_gradient": + colors = { + "low": [("color", "#f7fbff")], + "mid": [("color", "#abd0e6")], + "high": [("color", "#08306b")], + } + result = getattr(styler, f)(cmap="Blues", axis=axis)._compute().ctx + for i, cell in enumerate([(0, 0), (0, 1), (1, 0), (1, 1)]): + assert result[cell] == colors[expected[i]] + + +@pytest.mark.parametrize( + "cmap, expected", + [ + ( + "PuBu", + { + (4, 5): [("background-color", "#86b0d3"), ("color", "#000000")], + (4, 6): [("background-color", "#83afd3"), ("color", "#f1f1f1")], + }, + ), + ( + "YlOrRd", + { + (4, 8): [("background-color", "#fd913e"), ("color", "#000000")], + (4, 9): [("background-color", "#fd8f3d"), ("color", "#f1f1f1")], + }, + ), + ( + None, + { + (7, 0): [("background-color", "#48c16e"), ("color", "#f1f1f1")], + (7, 1): [("background-color", "#4cc26c"), ("color", "#000000")], + }, + ), + ], +) +def test_text_color_threshold(cmap, expected): + # GH 39888 + df = DataFrame(np.arange(100).reshape(10, 10)) + result = df.style.background_gradient(cmap=cmap, axis=None)._compute().ctx + for k in expected.keys(): + assert result[k] == expected[k] + + +def test_background_gradient_vmin_vmax(): + # GH 12145 + df = DataFrame(range(5)) + ctx = df.style.background_gradient(vmin=1, vmax=3)._compute().ctx + assert ctx[(0, 0)] == ctx[(1, 0)] + assert ctx[(4, 0)] == ctx[(3, 0)] + + +def test_background_gradient_int64(): + # GH 28869 + df1 = Series(range(3)).to_frame() + df2 = Series(range(3), dtype="Int64").to_frame() + ctx1 = df1.style.background_gradient()._compute().ctx + ctx2 = df2.style.background_gradient()._compute().ctx + assert ctx2[(0, 0)] == ctx1[(0, 0)] + assert ctx2[(1, 0)] == ctx1[(1, 0)] + assert ctx2[(2, 0)] == ctx1[(2, 0)] + + +@pytest.mark.parametrize( + "axis, gmap, expected", + [ + ( + 0, + [1, 2], + { + (0, 0): [("background-color", "#fff7fb"), ("color", "#000000")], + (1, 0): [("background-color", "#023858"), ("color", "#f1f1f1")], + (0, 1): [("background-color", "#fff7fb"), ("color", "#000000")], + (1, 1): [("background-color", "#023858"), ("color", "#f1f1f1")], + }, + ), + ( + 1, + [1, 2], + { + (0, 0): [("background-color", "#fff7fb"), ("color", "#000000")], + (1, 0): [("background-color", "#fff7fb"), ("color", "#000000")], + (0, 1): [("background-color", "#023858"), ("color", "#f1f1f1")], + (1, 1): [("background-color", "#023858"), ("color", "#f1f1f1")], + }, + ), + ( + None, + np.array([[2, 1], [1, 2]]), + { + (0, 0): [("background-color", "#023858"), ("color", "#f1f1f1")], + (1, 0): [("background-color", "#fff7fb"), ("color", "#000000")], + (0, 1): [("background-color", "#fff7fb"), ("color", "#000000")], + (1, 1): [("background-color", "#023858"), ("color", "#f1f1f1")], + }, + ), + ], +) +def test_background_gradient_gmap_array(styler_blank, axis, gmap, expected): + # tests when gmap is given as a sequence and converted to ndarray + result = styler_blank.background_gradient(axis=axis, gmap=gmap)._compute().ctx + assert result == expected + + +@pytest.mark.parametrize( + "gmap, axis", [([1, 2, 3], 0), ([1, 2], 1), (np.array([[1, 2], [1, 2]]), None)] +) +def test_background_gradient_gmap_array_raises(gmap, axis): + # test when gmap as converted ndarray is bad shape + df = DataFrame([[0, 0, 0], [0, 0, 0]]) + msg = "supplied 'gmap' is not correct shape" + with pytest.raises(ValueError, match=msg): + df.style.background_gradient(gmap=gmap, axis=axis)._compute() + + +@pytest.mark.parametrize( + "gmap", + [ + DataFrame( # reverse the columns + [[2, 1], [1, 2]], columns=["B", "A"], index=["X", "Y"] + ), + DataFrame( # reverse the index + [[2, 1], [1, 2]], columns=["A", "B"], index=["Y", "X"] + ), + DataFrame( # reverse the index and columns + [[1, 2], [2, 1]], columns=["B", "A"], index=["Y", "X"] + ), + DataFrame( # add unnecessary columns + [[1, 2, 3], [2, 1, 3]], columns=["A", "B", "C"], index=["X", "Y"] + ), + DataFrame( # add unnecessary index + [[1, 2], [2, 1], [3, 3]], columns=["A", "B"], index=["X", "Y", "Z"] + ), + ], +) +@pytest.mark.parametrize( + "subset, exp_gmap", # exp_gmap is underlying map DataFrame should conform to + [ + (None, [[1, 2], [2, 1]]), + (["A"], [[1], [2]]), # slice only column "A" in data and gmap + (["B", "A"], [[2, 1], [1, 2]]), # reverse the columns in data + (IndexSlice["X", :], [[1, 2]]), # slice only index "X" in data and gmap + (IndexSlice[["Y", "X"], :], [[2, 1], [1, 2]]), # reverse the index in data + ], +) +def test_background_gradient_gmap_dataframe_align(styler_blank, gmap, subset, exp_gmap): + # test gmap given as DataFrame that it aligns to the data including subset + expected = styler_blank.background_gradient(axis=None, gmap=exp_gmap, subset=subset) + result = styler_blank.background_gradient(axis=None, gmap=gmap, subset=subset) + assert expected._compute().ctx == result._compute().ctx + + +@pytest.mark.parametrize( + "gmap, axis, exp_gmap", + [ + (Series([2, 1], index=["Y", "X"]), 0, [[1, 1], [2, 2]]), # revrse the index + (Series([2, 1], index=["B", "A"]), 1, [[1, 2], [1, 2]]), # revrse the cols + (Series([1, 2, 3], index=["X", "Y", "Z"]), 0, [[1, 1], [2, 2]]), # add idx + (Series([1, 2, 3], index=["A", "B", "C"]), 1, [[1, 2], [1, 2]]), # add col + ], +) +def test_background_gradient_gmap_series_align(styler_blank, gmap, axis, exp_gmap): + # test gmap given as Series that it aligns to the data including subset + expected = styler_blank.background_gradient(axis=None, gmap=exp_gmap)._compute() + result = styler_blank.background_gradient(axis=axis, gmap=gmap)._compute() + assert expected.ctx == result.ctx + + +@pytest.mark.parametrize( + "gmap, axis", + [ + (DataFrame([[1, 2], [2, 1]], columns=["A", "B"], index=["X", "Y"]), 1), + (DataFrame([[1, 2], [2, 1]], columns=["A", "B"], index=["X", "Y"]), 0), + ], +) +def test_background_gradient_gmap_wrong_dataframe(styler_blank, gmap, axis): + # test giving a gmap in DataFrame but with wrong axis + msg = "'gmap' is a DataFrame but underlying data for operations is a Series" + with pytest.raises(ValueError, match=msg): + styler_blank.background_gradient(gmap=gmap, axis=axis)._compute() + + +def test_background_gradient_gmap_wrong_series(styler_blank): + # test giving a gmap in Series form but with wrong axis + msg = "'gmap' is a Series but underlying data for operations is a DataFrame" + gmap = Series([1, 2], index=["X", "Y"]) + with pytest.raises(ValueError, match=msg): + styler_blank.background_gradient(gmap=gmap, axis=None)._compute() + + +def test_background_gradient_nullable_dtypes(): + # GH 50712 + df1 = DataFrame([[1], [0], [np.nan]], dtype=float) + df2 = DataFrame([[1], [0], [None]], dtype="Int64") + + ctx1 = df1.style.background_gradient()._compute().ctx + ctx2 = df2.style.background_gradient()._compute().ctx + assert ctx1 == ctx2 + + +@pytest.mark.parametrize( + "cmap", + ["PuBu", mpl.colormaps["PuBu"]], +) +def test_bar_colormap(cmap): + data = DataFrame([[1, 2], [3, 4]]) + ctx = data.style.bar(cmap=cmap, axis=None)._compute().ctx + pubu_colors = { + (0, 0): "#d0d1e6", + (1, 0): "#056faf", + (0, 1): "#73a9cf", + (1, 1): "#023858", + } + for k, v in pubu_colors.items(): + assert v in ctx[k][1][1] + + +def test_bar_color_raises(df): + msg = "`color` must be string or list or tuple of 2 strings" + with pytest.raises(ValueError, match=msg): + df.style.bar(color={"a", "b"}).to_html() + with pytest.raises(ValueError, match=msg): + df.style.bar(color=["a", "b", "c"]).to_html() + + msg = "`color` and `cmap` cannot both be given" + with pytest.raises(ValueError, match=msg): + df.style.bar(color="something", cmap="something else").to_html() + + +@pytest.mark.parametrize( + "plot_method", + ["scatter", "hexbin"], +) +def test_pass_colormap_instance(df, plot_method): + # https://github.com/pandas-dev/pandas/issues/49374 + cmap = mpl.colors.ListedColormap([[1, 1, 1], [0, 0, 0]]) + df["c"] = df.A + df.B + kwargs = {"x": "A", "y": "B", "c": "c", "colormap": cmap} + if plot_method == "hexbin": + kwargs["C"] = kwargs.pop("c") + getattr(df.plot, plot_method)(**kwargs) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/test_non_unique.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/test_non_unique.py new file mode 100644 index 0000000000000000000000000000000000000000..e4d31fe21f2c9cf3454a67f8c7443382f7f1c0ef --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/test_non_unique.py @@ -0,0 +1,140 @@ +from textwrap import dedent + +import pytest + +from pandas import ( + DataFrame, + IndexSlice, +) + +pytest.importorskip("jinja2") + +from pandas.io.formats.style import Styler + + +@pytest.fixture +def df(): + return DataFrame( + [[1, 2, 3], [4, 5, 6], [7, 8, 9]], + index=["i", "j", "j"], + columns=["c", "d", "d"], + dtype=float, + ) + + +@pytest.fixture +def styler(df): + return Styler(df, uuid_len=0) + + +def test_format_non_unique(df): + # GH 41269 + + # test dict + html = df.style.format({"d": "{:.1f}"}).to_html() + for val in ["1.000000<", "4.000000<", "7.000000<"]: + assert val in html + for val in ["2.0<", "3.0<", "5.0<", "6.0<", "8.0<", "9.0<"]: + assert val in html + + # test subset + html = df.style.format(precision=1, subset=IndexSlice["j", "d"]).to_html() + for val in ["1.000000<", "4.000000<", "7.000000<", "2.000000<", "3.000000<"]: + assert val in html + for val in ["5.0<", "6.0<", "8.0<", "9.0<"]: + assert val in html + + +@pytest.mark.parametrize("func", ["apply", "map"]) +def test_apply_map_non_unique_raises(df, func): + # GH 41269 + if func == "apply": + op = lambda s: ["color: red;"] * len(s) + else: + op = lambda v: "color: red;" + + with pytest.raises(KeyError, match="`Styler.apply` and `.map` are not"): + getattr(df.style, func)(op)._compute() + + +def test_table_styles_dict_non_unique_index(styler): + styles = styler.set_table_styles( + {"j": [{"selector": "td", "props": "a: v;"}]}, axis=1 + ).table_styles + assert styles == [ + {"selector": "td.row1", "props": [("a", "v")]}, + {"selector": "td.row2", "props": [("a", "v")]}, + ] + + +def test_table_styles_dict_non_unique_columns(styler): + styles = styler.set_table_styles( + {"d": [{"selector": "td", "props": "a: v;"}]}, axis=0 + ).table_styles + assert styles == [ + {"selector": "td.col1", "props": [("a", "v")]}, + {"selector": "td.col2", "props": [("a", "v")]}, + ] + + +def test_tooltips_non_unique_raises(styler): + # ttips has unique keys + ttips = DataFrame([["1", "2"], ["3", "4"]], columns=["c", "d"], index=["a", "b"]) + styler.set_tooltips(ttips=ttips) # OK + + # ttips has non-unique columns + ttips = DataFrame([["1", "2"], ["3", "4"]], columns=["c", "c"], index=["a", "b"]) + with pytest.raises(KeyError, match="Tooltips render only if `ttips` has unique"): + styler.set_tooltips(ttips=ttips) + + # ttips has non-unique index + ttips = DataFrame([["1", "2"], ["3", "4"]], columns=["c", "d"], index=["a", "a"]) + with pytest.raises(KeyError, match="Tooltips render only if `ttips` has unique"): + styler.set_tooltips(ttips=ttips) + + +def test_set_td_classes_non_unique_raises(styler): + # classes has unique keys + classes = DataFrame([["1", "2"], ["3", "4"]], columns=["c", "d"], index=["a", "b"]) + styler.set_td_classes(classes=classes) # OK + + # classes has non-unique columns + classes = DataFrame([["1", "2"], ["3", "4"]], columns=["c", "c"], index=["a", "b"]) + with pytest.raises(KeyError, match="Classes render only if `classes` has unique"): + styler.set_td_classes(classes=classes) + + # classes has non-unique index + classes = DataFrame([["1", "2"], ["3", "4"]], columns=["c", "d"], index=["a", "a"]) + with pytest.raises(KeyError, match="Classes render only if `classes` has unique"): + styler.set_td_classes(classes=classes) + + +def test_hide_columns_non_unique(styler): + ctx = styler.hide(["d"], axis="columns")._translate(True, True) + + assert ctx["head"][0][1]["display_value"] == "c" + assert ctx["head"][0][1]["is_visible"] is True + + assert ctx["head"][0][2]["display_value"] == "d" + assert ctx["head"][0][2]["is_visible"] is False + + assert ctx["head"][0][3]["display_value"] == "d" + assert ctx["head"][0][3]["is_visible"] is False + + assert ctx["body"][0][1]["is_visible"] is True + assert ctx["body"][0][2]["is_visible"] is False + assert ctx["body"][0][3]["is_visible"] is False + + +def test_latex_non_unique(styler): + result = styler.to_latex() + assert result == dedent( + """\ + \\begin{tabular}{lrrr} + & c & d & d \\\\ + i & 1.000000 & 2.000000 & 3.000000 \\\\ + j & 4.000000 & 5.000000 & 6.000000 \\\\ + j & 7.000000 & 8.000000 & 9.000000 \\\\ + \\end{tabular} + """ + ) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/test_style.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/test_style.py new file mode 100644 index 0000000000000000000000000000000000000000..6fa72bd48031cca999b81cccfcedafcd3abcd924 --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/test_style.py @@ -0,0 +1,1588 @@ +import contextlib +import copy +import re +from textwrap import dedent + +import numpy as np +import pytest + +from pandas import ( + DataFrame, + IndexSlice, + MultiIndex, + Series, + option_context, +) +import pandas._testing as tm + +jinja2 = pytest.importorskip("jinja2") +from pandas.io.formats.style import ( # isort:skip + Styler, +) +from pandas.io.formats.style_render import ( + _get_level_lengths, + _get_trimming_maximums, + maybe_convert_css_to_tuples, + non_reducing_slice, +) + + +@pytest.fixture +def mi_df(): + return DataFrame( + [[1, 2], [3, 4]], + index=MultiIndex.from_product([["i0"], ["i1_a", "i1_b"]]), + columns=MultiIndex.from_product([["c0"], ["c1_a", "c1_b"]]), + dtype=int, + ) + + +@pytest.fixture +def mi_styler(mi_df): + return Styler(mi_df, uuid_len=0) + + +@pytest.fixture +def mi_styler_comp(mi_styler): + # comprehensively add features to mi_styler + mi_styler = mi_styler._copy(deepcopy=True) + mi_styler.css = {**mi_styler.css, "row": "ROW", "col": "COL"} + mi_styler.uuid_len = 5 + mi_styler.uuid = "abcde" + mi_styler.set_caption("capt") + mi_styler.set_table_styles([{"selector": "a", "props": "a:v;"}]) + mi_styler.hide(axis="columns") + mi_styler.hide([("c0", "c1_a")], axis="columns", names=True) + mi_styler.hide(axis="index") + mi_styler.hide([("i0", "i1_a")], axis="index", names=True) + mi_styler.set_table_attributes('class="box"') + other = mi_styler.data.agg(["mean"]) + other.index = MultiIndex.from_product([[""], other.index]) + mi_styler.concat(other.style) + mi_styler.format(na_rep="MISSING", precision=3) + mi_styler.format_index(precision=2, axis=0) + mi_styler.format_index(precision=4, axis=1) + mi_styler.highlight_max(axis=None) + mi_styler.map_index(lambda x: "color: white;", axis=0) + mi_styler.map_index(lambda x: "color: black;", axis=1) + mi_styler.set_td_classes( + DataFrame( + [["a", "b"], ["a", "c"]], index=mi_styler.index, columns=mi_styler.columns + ) + ) + mi_styler.set_tooltips( + DataFrame( + [["a2", "b2"], ["a2", "c2"]], + index=mi_styler.index, + columns=mi_styler.columns, + ) + ) + return mi_styler + + +@pytest.fixture +def blank_value(): + return " " + + +@pytest.fixture +def df(): + df = DataFrame({"A": [0, 1], "B": np.random.default_rng(2).standard_normal(2)}) + return df + + +@pytest.fixture +def styler(df): + df = DataFrame({"A": [0, 1], "B": np.random.default_rng(2).standard_normal(2)}) + return Styler(df) + + +@pytest.mark.parametrize( + "sparse_columns, exp_cols", + [ + ( + True, + [ + {"is_visible": True, "attributes": 'colspan="2"', "value": "c0"}, + {"is_visible": False, "attributes": "", "value": "c0"}, + ], + ), + ( + False, + [ + {"is_visible": True, "attributes": "", "value": "c0"}, + {"is_visible": True, "attributes": "", "value": "c0"}, + ], + ), + ], +) +def test_mi_styler_sparsify_columns(mi_styler, sparse_columns, exp_cols): + exp_l1_c0 = {"is_visible": True, "attributes": "", "display_value": "c1_a"} + exp_l1_c1 = {"is_visible": True, "attributes": "", "display_value": "c1_b"} + + ctx = mi_styler._translate(True, sparse_columns) + + assert exp_cols[0].items() <= ctx["head"][0][2].items() + assert exp_cols[1].items() <= ctx["head"][0][3].items() + assert exp_l1_c0.items() <= ctx["head"][1][2].items() + assert exp_l1_c1.items() <= ctx["head"][1][3].items() + + +@pytest.mark.parametrize( + "sparse_index, exp_rows", + [ + ( + True, + [ + {"is_visible": True, "attributes": 'rowspan="2"', "value": "i0"}, + {"is_visible": False, "attributes": "", "value": "i0"}, + ], + ), + ( + False, + [ + {"is_visible": True, "attributes": "", "value": "i0"}, + {"is_visible": True, "attributes": "", "value": "i0"}, + ], + ), + ], +) +def test_mi_styler_sparsify_index(mi_styler, sparse_index, exp_rows): + exp_l1_r0 = {"is_visible": True, "attributes": "", "display_value": "i1_a"} + exp_l1_r1 = {"is_visible": True, "attributes": "", "display_value": "i1_b"} + + ctx = mi_styler._translate(sparse_index, True) + + assert exp_rows[0].items() <= ctx["body"][0][0].items() + assert exp_rows[1].items() <= ctx["body"][1][0].items() + assert exp_l1_r0.items() <= ctx["body"][0][1].items() + assert exp_l1_r1.items() <= ctx["body"][1][1].items() + + +def test_mi_styler_sparsify_options(mi_styler): + with option_context("styler.sparse.index", False): + html1 = mi_styler.to_html() + with option_context("styler.sparse.index", True): + html2 = mi_styler.to_html() + + assert html1 != html2 + + with option_context("styler.sparse.columns", False): + html1 = mi_styler.to_html() + with option_context("styler.sparse.columns", True): + html2 = mi_styler.to_html() + + assert html1 != html2 + + +@pytest.mark.parametrize( + "rn, cn, max_els, max_rows, max_cols, exp_rn, exp_cn", + [ + (100, 100, 100, None, None, 12, 6), # reduce to (12, 6) < 100 elements + (1000, 3, 750, None, None, 250, 3), # dynamically reduce rows to 250, keep cols + (4, 1000, 500, None, None, 4, 125), # dynamically reduce cols to 125, keep rows + (1000, 3, 750, 10, None, 10, 3), # overwrite above dynamics with max_row + (4, 1000, 500, None, 5, 4, 5), # overwrite above dynamics with max_col + (100, 100, 700, 50, 50, 25, 25), # rows cols below given maxes so < 700 elmts + ], +) +def test_trimming_maximum(rn, cn, max_els, max_rows, max_cols, exp_rn, exp_cn): + rn, cn = _get_trimming_maximums( + rn, cn, max_els, max_rows, max_cols, scaling_factor=0.5 + ) + assert (rn, cn) == (exp_rn, exp_cn) + + +@pytest.mark.parametrize( + "option, val", + [ + ("styler.render.max_elements", 6), + ("styler.render.max_rows", 3), + ], +) +def test_render_trimming_rows(option, val): + # test auto and specific trimming of rows + df = DataFrame(np.arange(120).reshape(60, 2)) + with option_context(option, val): + ctx = df.style._translate(True, True) + assert len(ctx["head"][0]) == 3 # index + 2 data cols + assert len(ctx["body"]) == 4 # 3 data rows + trimming row + assert len(ctx["body"][0]) == 3 # index + 2 data cols + + +@pytest.mark.parametrize( + "option, val", + [ + ("styler.render.max_elements", 6), + ("styler.render.max_columns", 2), + ], +) +def test_render_trimming_cols(option, val): + # test auto and specific trimming of cols + df = DataFrame(np.arange(30).reshape(3, 10)) + with option_context(option, val): + ctx = df.style._translate(True, True) + assert len(ctx["head"][0]) == 4 # index + 2 data cols + trimming col + assert len(ctx["body"]) == 3 # 3 data rows + assert len(ctx["body"][0]) == 4 # index + 2 data cols + trimming col + + +def test_render_trimming_mi(): + midx = MultiIndex.from_product([[1, 2], [1, 2, 3]]) + df = DataFrame(np.arange(36).reshape(6, 6), columns=midx, index=midx) + with option_context("styler.render.max_elements", 4): + ctx = df.style._translate(True, True) + + assert len(ctx["body"][0]) == 5 # 2 indexes + 2 data cols + trimming row + assert {"attributes": 'rowspan="2"'}.items() <= ctx["body"][0][0].items() + assert {"class": "data row0 col_trim"}.items() <= ctx["body"][0][4].items() + assert {"class": "data row_trim col_trim"}.items() <= ctx["body"][2][4].items() + assert len(ctx["body"]) == 3 # 2 data rows + trimming row + + +def test_render_empty_mi(): + # GH 43305 + df = DataFrame(index=MultiIndex.from_product([["A"], [0, 1]], names=[None, "one"])) + expected = dedent( + """\ + > + + +   + one + + + """ + ) + assert expected in df.style.to_html() + + +@pytest.mark.parametrize("comprehensive", [True, False]) +@pytest.mark.parametrize("render", [True, False]) +@pytest.mark.parametrize("deepcopy", [True, False]) +def test_copy(comprehensive, render, deepcopy, mi_styler, mi_styler_comp): + styler = mi_styler_comp if comprehensive else mi_styler + styler.uuid_len = 5 + + s2 = copy.deepcopy(styler) if deepcopy else copy.copy(styler) # make copy and check + assert s2 is not styler + + if render: + styler.to_html() + + excl = [ + "cellstyle_map", # render time vars.. + "cellstyle_map_columns", + "cellstyle_map_index", + "template_latex", # render templates are class level + "template_html", + "template_html_style", + "template_html_table", + ] + if not deepcopy: # check memory locations are equal for all included attributes + for attr in [a for a in styler.__dict__ if (not callable(a) and a not in excl)]: + assert id(getattr(s2, attr)) == id(getattr(styler, attr)) + else: # check memory locations are different for nested or mutable vars + shallow = [ + "data", + "columns", + "index", + "uuid_len", + "uuid", + "caption", + "cell_ids", + "hide_index_", + "hide_columns_", + "hide_index_names", + "hide_column_names", + "table_attributes", + ] + for attr in shallow: + assert id(getattr(s2, attr)) == id(getattr(styler, attr)) + + for attr in [ + a + for a in styler.__dict__ + if (not callable(a) and a not in excl and a not in shallow) + ]: + if getattr(s2, attr) is None: + assert id(getattr(s2, attr)) == id(getattr(styler, attr)) + else: + assert id(getattr(s2, attr)) != id(getattr(styler, attr)) + + +@pytest.mark.parametrize("deepcopy", [True, False]) +def test_inherited_copy(mi_styler, deepcopy): + # Ensure that the inherited class is preserved when a Styler object is copied. + # GH 52728 + class CustomStyler(Styler): + pass + + custom_styler = CustomStyler(mi_styler.data) + custom_styler_copy = ( + copy.deepcopy(custom_styler) if deepcopy else copy.copy(custom_styler) + ) + assert isinstance(custom_styler_copy, CustomStyler) + + +def test_clear(mi_styler_comp): + # NOTE: if this test fails for new features then 'mi_styler_comp' should be updated + # to ensure proper testing of the 'copy', 'clear', 'export' methods with new feature + # GH 40675 + styler = mi_styler_comp + styler._compute() # execute applied methods + + clean_copy = Styler(styler.data, uuid=styler.uuid) + + excl = [ + "data", + "index", + "columns", + "uuid", + "uuid_len", # uuid is set to be the same on styler and clean_copy + "cell_ids", + "cellstyle_map", # execution time only + "cellstyle_map_columns", # execution time only + "cellstyle_map_index", # execution time only + "template_latex", # render templates are class level + "template_html", + "template_html_style", + "template_html_table", + ] + # tests vars are not same vals on obj and clean copy before clear (except for excl) + for attr in [a for a in styler.__dict__ if not (callable(a) or a in excl)]: + res = getattr(styler, attr) == getattr(clean_copy, attr) + if hasattr(res, "__iter__") and len(res) > 0: + assert not all(res) # some element in iterable differs + elif hasattr(res, "__iter__") and len(res) == 0: + pass # empty array + else: + assert not res # explicit var differs + + # test vars have same vales on obj and clean copy after clearing + styler.clear() + for attr in [a for a in styler.__dict__ if not callable(a)]: + res = getattr(styler, attr) == getattr(clean_copy, attr) + assert all(res) if hasattr(res, "__iter__") else res + + +def test_export(mi_styler_comp, mi_styler): + exp_attrs = [ + "_todo", + "hide_index_", + "hide_index_names", + "hide_columns_", + "hide_column_names", + "table_attributes", + "table_styles", + "css", + ] + for attr in exp_attrs: + check = getattr(mi_styler, attr) == getattr(mi_styler_comp, attr) + assert not ( + all(check) if (hasattr(check, "__iter__") and len(check) > 0) else check + ) + + export = mi_styler_comp.export() + used = mi_styler.use(export) + for attr in exp_attrs: + check = getattr(used, attr) == getattr(mi_styler_comp, attr) + assert all(check) if (hasattr(check, "__iter__") and len(check) > 0) else check + + used.to_html() + + +def test_hide_raises(mi_styler): + msg = "`subset` and `level` cannot be passed simultaneously" + with pytest.raises(ValueError, match=msg): + mi_styler.hide(axis="index", subset="something", level="something else") + + msg = "`level` must be of type `int`, `str` or list of such" + with pytest.raises(ValueError, match=msg): + mi_styler.hide(axis="index", level={"bad": 1, "type": 2}) + + +@pytest.mark.parametrize("level", [1, "one", [1], ["one"]]) +def test_hide_index_level(mi_styler, level): + mi_styler.index.names, mi_styler.columns.names = ["zero", "one"], ["zero", "one"] + ctx = mi_styler.hide(axis="index", level=level)._translate(False, True) + assert len(ctx["head"][0]) == 3 + assert len(ctx["head"][1]) == 3 + assert len(ctx["head"][2]) == 4 + assert ctx["head"][2][0]["is_visible"] + assert not ctx["head"][2][1]["is_visible"] + + assert ctx["body"][0][0]["is_visible"] + assert not ctx["body"][0][1]["is_visible"] + assert ctx["body"][1][0]["is_visible"] + assert not ctx["body"][1][1]["is_visible"] + + +@pytest.mark.parametrize("level", [1, "one", [1], ["one"]]) +@pytest.mark.parametrize("names", [True, False]) +def test_hide_columns_level(mi_styler, level, names): + mi_styler.columns.names = ["zero", "one"] + if names: + mi_styler.index.names = ["zero", "one"] + ctx = mi_styler.hide(axis="columns", level=level)._translate(True, False) + assert len(ctx["head"]) == (2 if names else 1) + + +@pytest.mark.parametrize("method", ["map", "apply"]) +@pytest.mark.parametrize("axis", ["index", "columns"]) +def test_apply_map_header(method, axis): + # GH 41893 + df = DataFrame({"A": [0, 0], "B": [1, 1]}, index=["C", "D"]) + func = { + "apply": lambda s: ["attr: val" if ("A" in v or "C" in v) else "" for v in s], + "map": lambda v: "attr: val" if ("A" in v or "C" in v) else "", + } + + # test execution added to todo + result = getattr(df.style, f"{method}_index")(func[method], axis=axis) + assert len(result._todo) == 1 + assert len(getattr(result, f"ctx_{axis}")) == 0 + + # test ctx object on compute + result._compute() + expected = { + (0, 0): [("attr", "val")], + } + assert getattr(result, f"ctx_{axis}") == expected + + +@pytest.mark.parametrize("method", ["apply", "map"]) +@pytest.mark.parametrize("axis", ["index", "columns"]) +def test_apply_map_header_mi(mi_styler, method, axis): + # GH 41893 + func = { + "apply": lambda s: ["attr: val;" if "b" in v else "" for v in s], + "map": lambda v: "attr: val" if "b" in v else "", + } + result = getattr(mi_styler, f"{method}_index")(func[method], axis=axis)._compute() + expected = {(1, 1): [("attr", "val")]} + assert getattr(result, f"ctx_{axis}") == expected + + +def test_apply_map_header_raises(mi_styler): + # GH 41893 + with pytest.raises(ValueError, match="No axis named bad for object type DataFrame"): + mi_styler.map_index(lambda v: "attr: val;", axis="bad")._compute() + + +class TestStyler: + def test_init_non_pandas(self): + msg = "``data`` must be a Series or DataFrame" + with pytest.raises(TypeError, match=msg): + Styler([1, 2, 3]) + + def test_init_series(self): + result = Styler(Series([1, 2])) + assert result.data.ndim == 2 + + def test_repr_html_ok(self, styler): + styler._repr_html_() + + def test_repr_html_mathjax(self, styler): + # gh-19824 / 41395 + assert "tex2jax_ignore" not in styler._repr_html_() + + with option_context("styler.html.mathjax", False): + assert "tex2jax_ignore" in styler._repr_html_() + + def test_update_ctx(self, styler): + styler._update_ctx(DataFrame({"A": ["color: red", "color: blue"]})) + expected = {(0, 0): [("color", "red")], (1, 0): [("color", "blue")]} + assert styler.ctx == expected + + def test_update_ctx_flatten_multi_and_trailing_semi(self, styler): + attrs = DataFrame({"A": ["color: red; foo: bar", "color:blue ; foo: baz;"]}) + styler._update_ctx(attrs) + expected = { + (0, 0): [("color", "red"), ("foo", "bar")], + (1, 0): [("color", "blue"), ("foo", "baz")], + } + assert styler.ctx == expected + + def test_render(self): + df = DataFrame({"A": [0, 1]}) + style = lambda x: Series(["color: red", "color: blue"], name=x.name) + s = Styler(df, uuid="AB").apply(style) + s.to_html() + # it worked? + + def test_multiple_render(self, df): + # GH 39396 + s = Styler(df, uuid_len=0).map(lambda x: "color: red;", subset=["A"]) + s.to_html() # do 2 renders to ensure css styles not duplicated + assert ( + '" in s.to_html() + ) + + def test_render_empty_dfs(self): + empty_df = DataFrame() + es = Styler(empty_df) + es.to_html() + # An index but no columns + DataFrame(columns=["a"]).style.to_html() + # A column but no index + DataFrame(index=["a"]).style.to_html() + # No IndexError raised? + + def test_render_double(self): + df = DataFrame({"A": [0, 1]}) + style = lambda x: Series( + ["color: red; border: 1px", "color: blue; border: 2px"], name=x.name + ) + s = Styler(df, uuid="AB").apply(style) + s.to_html() + # it worked? + + def test_set_properties(self): + df = DataFrame({"A": [0, 1]}) + result = df.style.set_properties(color="white", size="10px")._compute().ctx + # order is deterministic + v = [("color", "white"), ("size", "10px")] + expected = {(0, 0): v, (1, 0): v} + assert result.keys() == expected.keys() + for v1, v2 in zip(result.values(), expected.values()): + assert sorted(v1) == sorted(v2) + + def test_set_properties_subset(self): + df = DataFrame({"A": [0, 1]}) + result = ( + df.style.set_properties(subset=IndexSlice[0, "A"], color="white") + ._compute() + .ctx + ) + expected = {(0, 0): [("color", "white")]} + assert result == expected + + def test_empty_index_name_doesnt_display(self, blank_value): + # https://github.com/pandas-dev/pandas/pull/12090#issuecomment-180695902 + df = DataFrame({"A": [1, 2], "B": [3, 4], "C": [5, 6]}) + result = df.style._translate(True, True) + assert len(result["head"]) == 1 + expected = { + "class": "blank level0", + "type": "th", + "value": blank_value, + "is_visible": True, + "display_value": blank_value, + } + assert expected.items() <= result["head"][0][0].items() + + def test_index_name(self): + # https://github.com/pandas-dev/pandas/issues/11655 + df = DataFrame({"A": [1, 2], "B": [3, 4], "C": [5, 6]}) + result = df.set_index("A").style._translate(True, True) + expected = { + "class": "index_name level0", + "type": "th", + "value": "A", + "is_visible": True, + "display_value": "A", + } + assert expected.items() <= result["head"][1][0].items() + + def test_numeric_columns(self): + # https://github.com/pandas-dev/pandas/issues/12125 + # smoke test for _translate + df = DataFrame({0: [1, 2, 3]}) + df.style._translate(True, True) + + def test_apply_axis(self): + df = DataFrame({"A": [0, 0], "B": [1, 1]}) + f = lambda x: [f"val: {x.max()}" for v in x] + result = df.style.apply(f, axis=1) + assert len(result._todo) == 1 + assert len(result.ctx) == 0 + result._compute() + expected = { + (0, 0): [("val", "1")], + (0, 1): [("val", "1")], + (1, 0): [("val", "1")], + (1, 1): [("val", "1")], + } + assert result.ctx == expected + + result = df.style.apply(f, axis=0) + expected = { + (0, 0): [("val", "0")], + (0, 1): [("val", "1")], + (1, 0): [("val", "0")], + (1, 1): [("val", "1")], + } + result._compute() + assert result.ctx == expected + result = df.style.apply(f) # default + result._compute() + assert result.ctx == expected + + @pytest.mark.parametrize("axis", [0, 1]) + def test_apply_series_return(self, axis): + # GH 42014 + df = DataFrame([[1, 2], [3, 4]], index=["X", "Y"], columns=["X", "Y"]) + + # test Series return where len(Series) < df.index or df.columns but labels OK + func = lambda s: Series(["color: red;"], index=["Y"]) + result = df.style.apply(func, axis=axis)._compute().ctx + assert result[(1, 1)] == [("color", "red")] + assert result[(1 - axis, axis)] == [("color", "red")] + + # test Series return where labels align but different order + func = lambda s: Series(["color: red;", "color: blue;"], index=["Y", "X"]) + result = df.style.apply(func, axis=axis)._compute().ctx + assert result[(0, 0)] == [("color", "blue")] + assert result[(1, 1)] == [("color", "red")] + assert result[(1 - axis, axis)] == [("color", "red")] + assert result[(axis, 1 - axis)] == [("color", "blue")] + + @pytest.mark.parametrize("index", [False, True]) + @pytest.mark.parametrize("columns", [False, True]) + def test_apply_dataframe_return(self, index, columns): + # GH 42014 + df = DataFrame([[1, 2], [3, 4]], index=["X", "Y"], columns=["X", "Y"]) + idxs = ["X", "Y"] if index else ["Y"] + cols = ["X", "Y"] if columns else ["Y"] + df_styles = DataFrame("color: red;", index=idxs, columns=cols) + result = df.style.apply(lambda x: df_styles, axis=None)._compute().ctx + + assert result[(1, 1)] == [("color", "red")] # (Y,Y) styles always present + assert (result[(0, 1)] == [("color", "red")]) is index # (X,Y) only if index + assert (result[(1, 0)] == [("color", "red")]) is columns # (Y,X) only if cols + assert (result[(0, 0)] == [("color", "red")]) is (index and columns) # (X,X) + + @pytest.mark.parametrize( + "slice_", + [ + IndexSlice[:], + IndexSlice[:, ["A"]], + IndexSlice[[1], :], + IndexSlice[[1], ["A"]], + IndexSlice[:2, ["A", "B"]], + ], + ) + @pytest.mark.parametrize("axis", [0, 1]) + def test_apply_subset(self, slice_, axis, df): + def h(x, color="bar"): + return Series(f"color: {color}", index=x.index, name=x.name) + + result = df.style.apply(h, axis=axis, subset=slice_, color="baz")._compute().ctx + expected = { + (r, c): [("color", "baz")] + for r, row in enumerate(df.index) + for c, col in enumerate(df.columns) + if row in df.loc[slice_].index and col in df.loc[slice_].columns + } + assert result == expected + + @pytest.mark.parametrize( + "slice_", + [ + IndexSlice[:], + IndexSlice[:, ["A"]], + IndexSlice[[1], :], + IndexSlice[[1], ["A"]], + IndexSlice[:2, ["A", "B"]], + ], + ) + def test_map_subset(self, slice_, df): + result = df.style.map(lambda x: "color:baz;", subset=slice_)._compute().ctx + expected = { + (r, c): [("color", "baz")] + for r, row in enumerate(df.index) + for c, col in enumerate(df.columns) + if row in df.loc[slice_].index and col in df.loc[slice_].columns + } + assert result == expected + + @pytest.mark.parametrize( + "slice_", + [ + IndexSlice[:, IndexSlice["x", "A"]], + IndexSlice[:, IndexSlice[:, "A"]], + IndexSlice[:, IndexSlice[:, ["A", "C"]]], # missing col element + IndexSlice[IndexSlice["a", 1], :], + IndexSlice[IndexSlice[:, 1], :], + IndexSlice[IndexSlice[:, [1, 3]], :], # missing row element + IndexSlice[:, ("x", "A")], + IndexSlice[("a", 1), :], + ], + ) + def test_map_subset_multiindex(self, slice_): + # GH 19861 + # edited for GH 33562 + if ( + isinstance(slice_[-1], tuple) + and isinstance(slice_[-1][-1], list) + and "C" in slice_[-1][-1] + ): + ctx = pytest.raises(KeyError, match="C") + elif ( + isinstance(slice_[0], tuple) + and isinstance(slice_[0][1], list) + and 3 in slice_[0][1] + ): + ctx = pytest.raises(KeyError, match="3") + else: + ctx = contextlib.nullcontext() + + idx = MultiIndex.from_product([["a", "b"], [1, 2]]) + col = MultiIndex.from_product([["x", "y"], ["A", "B"]]) + df = DataFrame(np.random.default_rng(2).random((4, 4)), columns=col, index=idx) + + with ctx: + df.style.map(lambda x: "color: red;", subset=slice_).to_html() + + def test_map_subset_multiindex_code(self): + # https://github.com/pandas-dev/pandas/issues/25858 + # Checks styler.map works with multindex when codes are provided + codes = np.array([[0, 0, 1, 1], [0, 1, 0, 1]]) + columns = MultiIndex( + levels=[["a", "b"], ["%", "#"]], codes=codes, names=["", ""] + ) + df = DataFrame( + [[1, -1, 1, 1], [-1, 1, 1, 1]], index=["hello", "world"], columns=columns + ) + pct_subset = IndexSlice[:, IndexSlice[:, "%":"%"]] + + def color_negative_red(val): + color = "red" if val < 0 else "black" + return f"color: {color}" + + df.loc[pct_subset] + df.style.map(color_negative_red, subset=pct_subset) + + @pytest.mark.parametrize( + "stylefunc", ["background_gradient", "bar", "text_gradient"] + ) + def test_subset_for_boolean_cols(self, stylefunc): + # GH47838 + df = DataFrame( + [ + [1, 2], + [3, 4], + ], + columns=[False, True], + ) + styled = getattr(df.style, stylefunc)() + styled._compute() + assert set(styled.ctx) == {(0, 0), (0, 1), (1, 0), (1, 1)} + + def test_empty(self): + df = DataFrame({"A": [1, 0]}) + s = df.style + s.ctx = {(0, 0): [("color", "red")], (1, 0): [("", "")]} + + result = s._translate(True, True)["cellstyle"] + expected = [ + {"props": [("color", "red")], "selectors": ["row0_col0"]}, + {"props": [("", "")], "selectors": ["row1_col0"]}, + ] + assert result == expected + + def test_duplicate(self): + df = DataFrame({"A": [1, 0]}) + s = df.style + s.ctx = {(0, 0): [("color", "red")], (1, 0): [("color", "red")]} + + result = s._translate(True, True)["cellstyle"] + expected = [ + {"props": [("color", "red")], "selectors": ["row0_col0", "row1_col0"]} + ] + assert result == expected + + def test_init_with_na_rep(self): + # GH 21527 28358 + df = DataFrame([[None, None], [1.1, 1.2]], columns=["A", "B"]) + + ctx = Styler(df, na_rep="NA")._translate(True, True) + assert ctx["body"][0][1]["display_value"] == "NA" + assert ctx["body"][0][2]["display_value"] == "NA" + + def test_caption(self, df): + styler = Styler(df, caption="foo") + result = styler.to_html() + assert all(["caption" in result, "foo" in result]) + + styler = df.style + result = styler.set_caption("baz") + assert styler is result + assert styler.caption == "baz" + + def test_uuid(self, df): + styler = Styler(df, uuid="abc123") + result = styler.to_html() + assert "abc123" in result + + styler = df.style + result = styler.set_uuid("aaa") + assert result is styler + assert result.uuid == "aaa" + + def test_unique_id(self): + # See https://github.com/pandas-dev/pandas/issues/16780 + df = DataFrame({"a": [1, 3, 5, 6], "b": [2, 4, 12, 21]}) + result = df.style.to_html(uuid="test") + assert "test" in result + ids = re.findall('id="(.*?)"', result) + assert np.unique(ids).size == len(ids) + + def test_table_styles(self, df): + style = [{"selector": "th", "props": [("foo", "bar")]}] # default format + styler = Styler(df, table_styles=style) + result = " ".join(styler.to_html().split()) + assert "th { foo: bar; }" in result + + styler = df.style + result = styler.set_table_styles(style) + assert styler is result + assert styler.table_styles == style + + # GH 39563 + style = [{"selector": "th", "props": "foo:bar;"}] # css string format + styler = df.style.set_table_styles(style) + result = " ".join(styler.to_html().split()) + assert "th { foo: bar; }" in result + + def test_table_styles_multiple(self, df): + ctx = df.style.set_table_styles( + [ + {"selector": "th,td", "props": "color:red;"}, + {"selector": "tr", "props": "color:green;"}, + ] + )._translate(True, True)["table_styles"] + assert ctx == [ + {"selector": "th", "props": [("color", "red")]}, + {"selector": "td", "props": [("color", "red")]}, + {"selector": "tr", "props": [("color", "green")]}, + ] + + def test_table_styles_dict_multiple_selectors(self, df): + # GH 44011 + result = df.style.set_table_styles( + { + "B": [ + {"selector": "th,td", "props": [("border-left", "2px solid black")]} + ] + } + )._translate(True, True)["table_styles"] + + expected = [ + {"selector": "th.col1", "props": [("border-left", "2px solid black")]}, + {"selector": "td.col1", "props": [("border-left", "2px solid black")]}, + ] + + assert result == expected + + def test_maybe_convert_css_to_tuples(self): + expected = [("a", "b"), ("c", "d e")] + assert maybe_convert_css_to_tuples("a:b;c:d e;") == expected + assert maybe_convert_css_to_tuples("a: b ;c: d e ") == expected + expected = [] + assert maybe_convert_css_to_tuples("") == expected + + def test_maybe_convert_css_to_tuples_err(self): + msg = "Styles supplied as string must follow CSS rule formats" + with pytest.raises(ValueError, match=msg): + maybe_convert_css_to_tuples("err") + + def test_table_attributes(self, df): + attributes = 'class="foo" data-bar' + styler = Styler(df, table_attributes=attributes) + result = styler.to_html() + assert 'class="foo" data-bar' in result + + result = df.style.set_table_attributes(attributes).to_html() + assert 'class="foo" data-bar' in result + + def test_apply_none(self): + def f(x): + return DataFrame( + np.where(x == x.max(), "color: red", ""), + index=x.index, + columns=x.columns, + ) + + result = DataFrame([[1, 2], [3, 4]]).style.apply(f, axis=None)._compute().ctx + assert result[(1, 1)] == [("color", "red")] + + def test_trim(self, df): + result = df.style.to_html() # trim=True + assert result.count("#") == 0 + + result = df.style.highlight_max().to_html() + assert result.count("#") == len(df.columns) + + def test_export(self, df, styler): + f = lambda x: "color: red" if x > 0 else "color: blue" + g = lambda x, z: f"color: {z}" if x > 0 else f"color: {z}" + style1 = styler + style1.map(f).map(g, z="b").highlight_max()._compute() # = render + result = style1.export() + style2 = df.style + style2.use(result) + assert style1._todo == style2._todo + style2.to_html() + + def test_bad_apply_shape(self): + df = DataFrame([[1, 2], [3, 4]], index=["A", "B"], columns=["X", "Y"]) + + msg = "resulted in the apply method collapsing to a Series." + with pytest.raises(ValueError, match=msg): + df.style._apply(lambda x: "x") + + msg = "created invalid {} labels" + with pytest.raises(ValueError, match=msg.format("index")): + df.style._apply(lambda x: [""]) + + with pytest.raises(ValueError, match=msg.format("index")): + df.style._apply(lambda x: ["", "", "", ""]) + + with pytest.raises(ValueError, match=msg.format("index")): + df.style._apply(lambda x: Series(["a:v;", ""], index=["A", "C"]), axis=0) + + with pytest.raises(ValueError, match=msg.format("columns")): + df.style._apply(lambda x: ["", "", ""], axis=1) + + with pytest.raises(ValueError, match=msg.format("columns")): + df.style._apply(lambda x: Series(["a:v;", ""], index=["X", "Z"]), axis=1) + + msg = "returned ndarray with wrong shape" + with pytest.raises(ValueError, match=msg): + df.style._apply(lambda x: np.array([[""], [""]]), axis=None) + + def test_apply_bad_return(self): + def f(x): + return "" + + df = DataFrame([[1, 2], [3, 4]]) + msg = ( + "must return a DataFrame or ndarray when passed to `Styler.apply` " + "with axis=None" + ) + with pytest.raises(TypeError, match=msg): + df.style._apply(f, axis=None) + + @pytest.mark.parametrize("axis", ["index", "columns"]) + def test_apply_bad_labels(self, axis): + def f(x): + return DataFrame(**{axis: ["bad", "labels"]}) + + df = DataFrame([[1, 2], [3, 4]]) + msg = f"created invalid {axis} labels." + with pytest.raises(ValueError, match=msg): + df.style._apply(f, axis=None) + + def test_get_level_lengths(self): + index = MultiIndex.from_product([["a", "b"], [0, 1, 2]]) + expected = { + (0, 0): 3, + (0, 3): 3, + (1, 0): 1, + (1, 1): 1, + (1, 2): 1, + (1, 3): 1, + (1, 4): 1, + (1, 5): 1, + } + result = _get_level_lengths(index, sparsify=True, max_index=100) + tm.assert_dict_equal(result, expected) + + expected = { + (0, 0): 1, + (0, 1): 1, + (0, 2): 1, + (0, 3): 1, + (0, 4): 1, + (0, 5): 1, + (1, 0): 1, + (1, 1): 1, + (1, 2): 1, + (1, 3): 1, + (1, 4): 1, + (1, 5): 1, + } + result = _get_level_lengths(index, sparsify=False, max_index=100) + tm.assert_dict_equal(result, expected) + + def test_get_level_lengths_un_sorted(self): + index = MultiIndex.from_arrays([[1, 1, 2, 1], ["a", "b", "b", "d"]]) + expected = { + (0, 0): 2, + (0, 2): 1, + (0, 3): 1, + (1, 0): 1, + (1, 1): 1, + (1, 2): 1, + (1, 3): 1, + } + result = _get_level_lengths(index, sparsify=True, max_index=100) + tm.assert_dict_equal(result, expected) + + expected = { + (0, 0): 1, + (0, 1): 1, + (0, 2): 1, + (0, 3): 1, + (1, 0): 1, + (1, 1): 1, + (1, 2): 1, + (1, 3): 1, + } + result = _get_level_lengths(index, sparsify=False, max_index=100) + tm.assert_dict_equal(result, expected) + + def test_mi_sparse_index_names(self, blank_value): + # Test the class names and displayed value are correct on rendering MI names + df = DataFrame( + {"A": [1, 2]}, + index=MultiIndex.from_arrays( + [["a", "a"], [0, 1]], names=["idx_level_0", "idx_level_1"] + ), + ) + result = df.style._translate(True, True) + head = result["head"][1] + expected = [ + { + "class": "index_name level0", + "display_value": "idx_level_0", + "is_visible": True, + }, + { + "class": "index_name level1", + "display_value": "idx_level_1", + "is_visible": True, + }, + { + "class": "blank col0", + "display_value": blank_value, + "is_visible": True, + }, + ] + for i, expected_dict in enumerate(expected): + assert expected_dict.items() <= head[i].items() + + def test_mi_sparse_column_names(self, blank_value): + df = DataFrame( + np.arange(16).reshape(4, 4), + index=MultiIndex.from_arrays( + [["a", "a", "b", "a"], [0, 1, 1, 2]], + names=["idx_level_0", "idx_level_1"], + ), + columns=MultiIndex.from_arrays( + [["C1", "C1", "C2", "C2"], [1, 0, 1, 0]], names=["colnam_0", "colnam_1"] + ), + ) + result = Styler(df, cell_ids=False)._translate(True, True) + + for level in [0, 1]: + head = result["head"][level] + expected = [ + { + "class": "blank", + "display_value": blank_value, + "is_visible": True, + }, + { + "class": f"index_name level{level}", + "display_value": f"colnam_{level}", + "is_visible": True, + }, + ] + for i, expected_dict in enumerate(expected): + assert expected_dict.items() <= head[i].items() + + def test_hide_column_headers(self, df, styler): + ctx = styler.hide(axis="columns")._translate(True, True) + assert len(ctx["head"]) == 0 # no header entries with an unnamed index + + df.index.name = "some_name" + ctx = df.style.hide(axis="columns")._translate(True, True) + assert len(ctx["head"]) == 1 + # index names still visible, changed in #42101, reverted in 43404 + + def test_hide_single_index(self, df): + # GH 14194 + # single unnamed index + ctx = df.style._translate(True, True) + assert ctx["body"][0][0]["is_visible"] + assert ctx["head"][0][0]["is_visible"] + ctx2 = df.style.hide(axis="index")._translate(True, True) + assert not ctx2["body"][0][0]["is_visible"] + assert not ctx2["head"][0][0]["is_visible"] + + # single named index + ctx3 = df.set_index("A").style._translate(True, True) + assert ctx3["body"][0][0]["is_visible"] + assert len(ctx3["head"]) == 2 # 2 header levels + assert ctx3["head"][0][0]["is_visible"] + + ctx4 = df.set_index("A").style.hide(axis="index")._translate(True, True) + assert not ctx4["body"][0][0]["is_visible"] + assert len(ctx4["head"]) == 1 # only 1 header levels + assert not ctx4["head"][0][0]["is_visible"] + + def test_hide_multiindex(self): + # GH 14194 + df = DataFrame( + {"A": [1, 2], "B": [1, 2]}, + index=MultiIndex.from_arrays( + [["a", "a"], [0, 1]], names=["idx_level_0", "idx_level_1"] + ), + ) + ctx1 = df.style._translate(True, True) + # tests for 'a' and '0' + assert ctx1["body"][0][0]["is_visible"] + assert ctx1["body"][0][1]["is_visible"] + # check for blank header rows + assert len(ctx1["head"][0]) == 4 # two visible indexes and two data columns + + ctx2 = df.style.hide(axis="index")._translate(True, True) + # tests for 'a' and '0' + assert not ctx2["body"][0][0]["is_visible"] + assert not ctx2["body"][0][1]["is_visible"] + # check for blank header rows + assert len(ctx2["head"][0]) == 3 # one hidden (col name) and two data columns + assert not ctx2["head"][0][0]["is_visible"] + + def test_hide_columns_single_level(self, df): + # GH 14194 + # test hiding single column + ctx = df.style._translate(True, True) + assert ctx["head"][0][1]["is_visible"] + assert ctx["head"][0][1]["display_value"] == "A" + assert ctx["head"][0][2]["is_visible"] + assert ctx["head"][0][2]["display_value"] == "B" + assert ctx["body"][0][1]["is_visible"] # col A, row 1 + assert ctx["body"][1][2]["is_visible"] # col B, row 1 + + ctx = df.style.hide("A", axis="columns")._translate(True, True) + assert not ctx["head"][0][1]["is_visible"] + assert not ctx["body"][0][1]["is_visible"] # col A, row 1 + assert ctx["body"][1][2]["is_visible"] # col B, row 1 + + # test hiding multiple columns + ctx = df.style.hide(["A", "B"], axis="columns")._translate(True, True) + assert not ctx["head"][0][1]["is_visible"] + assert not ctx["head"][0][2]["is_visible"] + assert not ctx["body"][0][1]["is_visible"] # col A, row 1 + assert not ctx["body"][1][2]["is_visible"] # col B, row 1 + + def test_hide_columns_index_mult_levels(self): + # GH 14194 + # setup dataframe with multiple column levels and indices + i1 = MultiIndex.from_arrays( + [["a", "a"], [0, 1]], names=["idx_level_0", "idx_level_1"] + ) + i2 = MultiIndex.from_arrays( + [["b", "b"], [0, 1]], names=["col_level_0", "col_level_1"] + ) + df = DataFrame([[1, 2], [3, 4]], index=i1, columns=i2) + ctx = df.style._translate(True, True) + # column headers + assert ctx["head"][0][2]["is_visible"] + assert ctx["head"][1][2]["is_visible"] + assert ctx["head"][1][3]["display_value"] == "1" + # indices + assert ctx["body"][0][0]["is_visible"] + # data + assert ctx["body"][1][2]["is_visible"] + assert ctx["body"][1][2]["display_value"] == "3" + assert ctx["body"][1][3]["is_visible"] + assert ctx["body"][1][3]["display_value"] == "4" + + # hide top column level, which hides both columns + ctx = df.style.hide("b", axis="columns")._translate(True, True) + assert not ctx["head"][0][2]["is_visible"] # b + assert not ctx["head"][1][2]["is_visible"] # 0 + assert not ctx["body"][1][2]["is_visible"] # 3 + assert ctx["body"][0][0]["is_visible"] # index + + # hide first column only + ctx = df.style.hide([("b", 0)], axis="columns")._translate(True, True) + assert not ctx["head"][0][2]["is_visible"] # b + assert ctx["head"][0][3]["is_visible"] # b + assert not ctx["head"][1][2]["is_visible"] # 0 + assert not ctx["body"][1][2]["is_visible"] # 3 + assert ctx["body"][1][3]["is_visible"] + assert ctx["body"][1][3]["display_value"] == "4" + + # hide second column and index + ctx = df.style.hide([("b", 1)], axis=1).hide(axis=0)._translate(True, True) + assert not ctx["body"][0][0]["is_visible"] # index + assert len(ctx["head"][0]) == 3 + assert ctx["head"][0][1]["is_visible"] # b + assert ctx["head"][1][1]["is_visible"] # 0 + assert not ctx["head"][1][2]["is_visible"] # 1 + assert not ctx["body"][1][3]["is_visible"] # 4 + assert ctx["body"][1][2]["is_visible"] + assert ctx["body"][1][2]["display_value"] == "3" + + # hide top row level, which hides both rows so body empty + ctx = df.style.hide("a", axis="index")._translate(True, True) + assert ctx["body"] == [] + + # hide first row only + ctx = df.style.hide(("a", 0), axis="index")._translate(True, True) + for i in [0, 1, 2, 3]: + assert "row1" in ctx["body"][0][i]["class"] # row0 not included in body + assert ctx["body"][0][i]["is_visible"] + + def test_pipe(self, df): + def set_caption_from_template(styler, a, b): + return styler.set_caption(f"Dataframe with a = {a} and b = {b}") + + styler = df.style.pipe(set_caption_from_template, "A", b="B") + assert "Dataframe with a = A and b = B" in styler.to_html() + + # Test with an argument that is a (callable, keyword_name) pair. + def f(a, b, styler): + return (a, b, styler) + + styler = df.style + result = styler.pipe((f, "styler"), a=1, b=2) + assert result == (1, 2, styler) + + def test_no_cell_ids(self): + # GH 35588 + # GH 35663 + df = DataFrame(data=[[0]]) + styler = Styler(df, uuid="_", cell_ids=False) + styler.to_html() + s = styler.to_html() # render twice to ensure ctx is not updated + assert s.find('') != -1 + + @pytest.mark.parametrize( + "classes", + [ + DataFrame( + data=[["", "test-class"], [np.nan, None]], + columns=["A", "B"], + index=["a", "b"], + ), + DataFrame(data=[["test-class"]], columns=["B"], index=["a"]), + DataFrame(data=[["test-class", "unused"]], columns=["B", "C"], index=["a"]), + ], + ) + def test_set_data_classes(self, classes): + # GH 36159 + df = DataFrame(data=[[0, 1], [2, 3]], columns=["A", "B"], index=["a", "b"]) + s = Styler(df, uuid_len=0, cell_ids=False).set_td_classes(classes).to_html() + assert '0' in s + assert '1' in s + assert '2' in s + assert '3' in s + # GH 39317 + s = Styler(df, uuid_len=0, cell_ids=True).set_td_classes(classes).to_html() + assert '0' in s + assert '1' in s + assert '2' in s + assert '3' in s + + def test_set_data_classes_reindex(self): + # GH 39317 + df = DataFrame( + data=[[0, 1, 2], [3, 4, 5], [6, 7, 8]], columns=[0, 1, 2], index=[0, 1, 2] + ) + classes = DataFrame( + data=[["mi", "ma"], ["mu", "mo"]], + columns=[0, 2], + index=[0, 2], + ) + s = Styler(df, uuid_len=0).set_td_classes(classes).to_html() + assert '0' in s + assert '2' in s + assert '4' in s + assert '6' in s + assert '8' in s + + def test_chaining_table_styles(self): + # GH 35607 + df = DataFrame(data=[[0, 1], [1, 2]], columns=["A", "B"]) + styler = df.style.set_table_styles( + [{"selector": "", "props": [("background-color", "yellow")]}] + ).set_table_styles( + [{"selector": ".col0", "props": [("background-color", "blue")]}], + overwrite=False, + ) + assert len(styler.table_styles) == 2 + + def test_column_and_row_styling(self): + # GH 35607 + df = DataFrame(data=[[0, 1], [1, 2]], columns=["A", "B"]) + s = Styler(df, uuid_len=0) + s = s.set_table_styles({"A": [{"selector": "", "props": [("color", "blue")]}]}) + assert "#T_ .col0 {\n color: blue;\n}" in s.to_html() + s = s.set_table_styles( + {0: [{"selector": "", "props": [("color", "blue")]}]}, axis=1 + ) + assert "#T_ .row0 {\n color: blue;\n}" in s.to_html() + + @pytest.mark.parametrize("len_", [1, 5, 32, 33, 100]) + def test_uuid_len(self, len_): + # GH 36345 + df = DataFrame(data=[["A"]]) + s = Styler(df, uuid_len=len_, cell_ids=False).to_html() + strt = s.find('id="T_') + end = s[strt + 6 :].find('"') + if len_ > 32: + assert end == 32 + else: + assert end == len_ + + @pytest.mark.parametrize("len_", [-2, "bad", None]) + def test_uuid_len_raises(self, len_): + # GH 36345 + df = DataFrame(data=[["A"]]) + msg = "``uuid_len`` must be an integer in range \\[0, 32\\]." + with pytest.raises(TypeError, match=msg): + Styler(df, uuid_len=len_, cell_ids=False).to_html() + + @pytest.mark.parametrize( + "slc", + [ + IndexSlice[:, :], + IndexSlice[:, 1], + IndexSlice[1, :], + IndexSlice[[1], [1]], + IndexSlice[1, [1]], + IndexSlice[[1], 1], + IndexSlice[1], + IndexSlice[1, 1], + slice(None, None, None), + [0, 1], + np.array([0, 1]), + Series([0, 1]), + ], + ) + def test_non_reducing_slice(self, slc): + df = DataFrame([[0, 1], [2, 3]]) + + tslice_ = non_reducing_slice(slc) + assert isinstance(df.loc[tslice_], DataFrame) + + @pytest.mark.parametrize("box", [list, Series, np.array]) + def test_list_slice(self, box): + # like dataframe getitem + subset = box(["A"]) + + df = DataFrame({"A": [1, 2], "B": [3, 4]}, index=["A", "B"]) + expected = IndexSlice[:, ["A"]] + + result = non_reducing_slice(subset) + tm.assert_frame_equal(df.loc[result], df.loc[expected]) + + def test_non_reducing_slice_on_multiindex(self): + # GH 19861 + dic = { + ("a", "d"): [1, 4], + ("a", "c"): [2, 3], + ("b", "c"): [3, 2], + ("b", "d"): [4, 1], + } + df = DataFrame(dic, index=[0, 1]) + idx = IndexSlice + slice_ = idx[:, idx["b", "d"]] + tslice_ = non_reducing_slice(slice_) + + result = df.loc[tslice_] + expected = DataFrame({("b", "d"): [4, 1]}) + tm.assert_frame_equal(result, expected) + + @pytest.mark.parametrize( + "slice_", + [ + IndexSlice[:, :], + # check cols + IndexSlice[:, IndexSlice[["a"]]], # inferred deeper need list + IndexSlice[:, IndexSlice[["a"], ["c"]]], # inferred deeper need list + IndexSlice[:, IndexSlice["a", "c", :]], + IndexSlice[:, IndexSlice["a", :, "e"]], + IndexSlice[:, IndexSlice[:, "c", "e"]], + IndexSlice[:, IndexSlice["a", ["c", "d"], :]], # check list + IndexSlice[:, IndexSlice["a", ["c", "d", "-"], :]], # don't allow missing + IndexSlice[:, IndexSlice["a", ["c", "d", "-"], "e"]], # no slice + # check rows + IndexSlice[IndexSlice[["U"]], :], # inferred deeper need list + IndexSlice[IndexSlice[["U"], ["W"]], :], # inferred deeper need list + IndexSlice[IndexSlice["U", "W", :], :], + IndexSlice[IndexSlice["U", :, "Y"], :], + IndexSlice[IndexSlice[:, "W", "Y"], :], + IndexSlice[IndexSlice[:, "W", ["Y", "Z"]], :], # check list + IndexSlice[IndexSlice[:, "W", ["Y", "Z", "-"]], :], # don't allow missing + IndexSlice[IndexSlice["U", "W", ["Y", "Z", "-"]], :], # no slice + # check simultaneous + IndexSlice[IndexSlice[:, "W", "Y"], IndexSlice["a", "c", :]], + ], + ) + def test_non_reducing_multi_slice_on_multiindex(self, slice_): + # GH 33562 + cols = MultiIndex.from_product([["a", "b"], ["c", "d"], ["e", "f"]]) + idxs = MultiIndex.from_product([["U", "V"], ["W", "X"], ["Y", "Z"]]) + df = DataFrame(np.arange(64).reshape(8, 8), columns=cols, index=idxs) + + for lvl in [0, 1]: + key = slice_[lvl] + if isinstance(key, tuple): + for subkey in key: + if isinstance(subkey, list) and "-" in subkey: + # not present in the index level, raises KeyError since 2.0 + with pytest.raises(KeyError, match="-"): + df.loc[slice_] + return + + expected = df.loc[slice_] + result = df.loc[non_reducing_slice(slice_)] + tm.assert_frame_equal(result, expected) + + +def test_hidden_index_names(mi_df): + mi_df.index.names = ["Lev0", "Lev1"] + mi_styler = mi_df.style + ctx = mi_styler._translate(True, True) + assert len(ctx["head"]) == 3 # 2 column index levels + 1 index names row + + mi_styler.hide(axis="index", names=True) + ctx = mi_styler._translate(True, True) + assert len(ctx["head"]) == 2 # index names row is unparsed + for i in range(4): + assert ctx["body"][0][i]["is_visible"] # 2 index levels + 2 data values visible + + mi_styler.hide(axis="index", level=1) + ctx = mi_styler._translate(True, True) + assert len(ctx["head"]) == 2 # index names row is still hidden + assert ctx["body"][0][0]["is_visible"] is True + assert ctx["body"][0][1]["is_visible"] is False + + +def test_hidden_column_names(mi_df): + mi_df.columns.names = ["Lev0", "Lev1"] + mi_styler = mi_df.style + ctx = mi_styler._translate(True, True) + assert ctx["head"][0][1]["display_value"] == "Lev0" + assert ctx["head"][1][1]["display_value"] == "Lev1" + + mi_styler.hide(names=True, axis="columns") + ctx = mi_styler._translate(True, True) + assert ctx["head"][0][1]["display_value"] == " " + assert ctx["head"][1][1]["display_value"] == " " + + mi_styler.hide(level=0, axis="columns") + ctx = mi_styler._translate(True, True) + assert len(ctx["head"]) == 1 # no index names and only one visible column headers + assert ctx["head"][0][1]["display_value"] == " " + + +@pytest.mark.parametrize("caption", [1, ("a", "b", "c"), (1, "s")]) +def test_caption_raises(mi_styler, caption): + msg = "`caption` must be either a string or 2-tuple of strings." + with pytest.raises(ValueError, match=msg): + mi_styler.set_caption(caption) + + +def test_hiding_headers_over_index_no_sparsify(): + # GH 43464 + midx = MultiIndex.from_product([[1, 2], ["a", "a", "b"]]) + df = DataFrame(9, index=midx, columns=[0]) + ctx = df.style._translate(False, False) + assert len(ctx["body"]) == 6 + ctx = df.style.hide((1, "a"), axis=0)._translate(False, False) + assert len(ctx["body"]) == 4 + assert "row2" in ctx["body"][0][0]["class"] + + +def test_hiding_headers_over_columns_no_sparsify(): + # GH 43464 + midx = MultiIndex.from_product([[1, 2], ["a", "a", "b"]]) + df = DataFrame(9, columns=midx, index=[0]) + ctx = df.style._translate(False, False) + for ix in [(0, 1), (0, 2), (1, 1), (1, 2)]: + assert ctx["head"][ix[0]][ix[1]]["is_visible"] is True + ctx = df.style.hide((1, "a"), axis="columns")._translate(False, False) + for ix in [(0, 1), (0, 2), (1, 1), (1, 2)]: + assert ctx["head"][ix[0]][ix[1]]["is_visible"] is False + + +def test_get_level_lengths_mi_hidden(): + # GH 43464 + index = MultiIndex.from_arrays([[1, 1, 1, 2, 2, 2], ["a", "a", "b", "a", "a", "b"]]) + expected = { + (0, 2): 1, + (0, 3): 1, + (0, 4): 1, + (0, 5): 1, + (1, 2): 1, + (1, 3): 1, + (1, 4): 1, + (1, 5): 1, + } + result = _get_level_lengths( + index, + sparsify=False, + max_index=100, + hidden_elements=[0, 1, 0, 1], # hidden element can repeat if duplicated index + ) + tm.assert_dict_equal(result, expected) + + +def test_row_trimming_hide_index(): + # gh 43703 + df = DataFrame([[1], [2], [3], [4], [5]]) + with option_context("styler.render.max_rows", 2): + ctx = df.style.hide([0, 1], axis="index")._translate(True, True) + assert len(ctx["body"]) == 3 + for r, val in enumerate(["3", "4", "..."]): + assert ctx["body"][r][1]["display_value"] == val + + +def test_row_trimming_hide_index_mi(): + # gh 44247 + df = DataFrame([[1], [2], [3], [4], [5]]) + df.index = MultiIndex.from_product([[0], [0, 1, 2, 3, 4]]) + with option_context("styler.render.max_rows", 2): + ctx = df.style.hide([(0, 0), (0, 1)], axis="index")._translate(True, True) + assert len(ctx["body"]) == 3 + + # level 0 index headers (sparsified) + assert {"value": 0, "attributes": 'rowspan="2"', "is_visible": True}.items() <= ctx[ + "body" + ][0][0].items() + assert {"value": 0, "attributes": "", "is_visible": False}.items() <= ctx["body"][ + 1 + ][0].items() + assert {"value": "...", "is_visible": True}.items() <= ctx["body"][2][0].items() + + for r, val in enumerate(["2", "3", "..."]): + assert ctx["body"][r][1]["display_value"] == val # level 1 index headers + for r, val in enumerate(["3", "4", "..."]): + assert ctx["body"][r][2]["display_value"] == val # data values + + +def test_col_trimming_hide_columns(): + # gh 44272 + df = DataFrame([[1, 2, 3, 4, 5]]) + with option_context("styler.render.max_columns", 2): + ctx = df.style.hide([0, 1], axis="columns")._translate(True, True) + + assert len(ctx["head"][0]) == 6 # blank, [0, 1 (hidden)], [2 ,3 (visible)], + trim + for c, vals in enumerate([(1, False), (2, True), (3, True), ("...", True)]): + assert ctx["head"][0][c + 2]["value"] == vals[0] + assert ctx["head"][0][c + 2]["is_visible"] == vals[1] + + assert len(ctx["body"][0]) == 6 # index + 2 hidden + 2 visible + trimming col + + +def test_no_empty_apply(mi_styler): + # 45313 + mi_styler.apply(lambda s: ["a:v;"] * 2, subset=[False, False]) + mi_styler._compute() + + +@pytest.mark.parametrize("format", ["html", "latex", "string"]) +def test_output_buffer(mi_styler, format): + # gh 47053 + with tm.ensure_clean(f"delete_me.{format}") as f: + getattr(mi_styler, f"to_{format}")(f) diff --git a/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/test_to_latex.py b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/test_to_latex.py new file mode 100644 index 0000000000000000000000000000000000000000..7f1443c3ee66be040f668f546682924207cfd31e --- /dev/null +++ b/code/LaDi-RL-old-qwen-cod/LaDi-RL-old-qwen-cod/venv/lib64/python3.10/site-packages/pandas/tests/io/formats/style/test_to_latex.py @@ -0,0 +1,1090 @@ +from textwrap import dedent + +import numpy as np +import pytest + +from pandas import ( + DataFrame, + MultiIndex, + Series, + option_context, +) + +pytest.importorskip("jinja2") +from pandas.io.formats.style import Styler +from pandas.io.formats.style_render import ( + _parse_latex_cell_styles, + _parse_latex_css_conversion, + _parse_latex_header_span, + _parse_latex_table_styles, + _parse_latex_table_wrapping, +) + + +@pytest.fixture +def df(): + return DataFrame( + {"A": [0, 1], "B": [-0.61, -1.22], "C": Series(["ab", "cd"], dtype=object)} + ) + + +@pytest.fixture +def df_ext(): + return DataFrame( + {"A": [0, 1, 2], "B": [-0.61, -1.22, -2.22], "C": ["ab", "cd", "de"]} + ) + + +@pytest.fixture +def styler(df): + return Styler(df, uuid_len=0, precision=2) + + +def test_minimal_latex_tabular(styler): + expected = dedent( + """\ + \\begin{tabular}{lrrl} + & A & B & C \\\\ + 0 & 0 & -0.61 & ab \\\\ + 1 & 1 & -1.22 & cd \\\\ + \\end{tabular} + """ + ) + assert styler.to_latex() == expected + + +def test_tabular_hrules(styler): + expected = dedent( + """\ + \\begin{tabular}{lrrl} + \\toprule + & A & B & C \\\\ + \\midrule + 0 & 0 & -0.61 & ab \\\\ + 1 & 1 & -1.22 & cd \\\\ + \\bottomrule + \\end{tabular} + """ + ) + assert styler.to_latex(hrules=True) == expected + + +def test_tabular_custom_hrules(styler): + styler.set_table_styles( + [ + {"selector": "toprule", "props": ":hline"}, + {"selector": "bottomrule", "props": ":otherline"}, + ] + ) # no midrule + expected = dedent( + """\ + \\begin{tabular}{lrrl} + \\hline + & A & B & C \\\\ + 0 & 0 & -0.61 & ab \\\\ + 1 & 1 & -1.22 & cd \\\\ + \\otherline + \\end{tabular} + """ + ) + assert styler.to_latex() == expected + + +def test_column_format(styler): + # default setting is already tested in `test_latex_minimal_tabular` + styler.set_table_styles([{"selector": "column_format", "props": ":cccc"}]) + + assert "\\begin{tabular}{rrrr}" in styler.to_latex(column_format="rrrr") + styler.set_table_styles([{"selector": "column_format", "props": ":r|r|cc"}]) + assert "\\begin{tabular}{r|r|cc}" in styler.to_latex() + + +def test_siunitx_cols(styler): + expected = dedent( + """\ + \\begin{tabular}{lSSl} + {} & {A} & {B} & {C} \\\\ + 0 & 0 & -0.61 & ab \\\\ + 1 & 1 & -1.22 & cd \\\\ + \\end{tabular} + """ + ) + assert styler.to_latex(siunitx=True) == expected + + +def test_position(styler): + assert "\\begin{table}[h!]" in styler.to_latex(position="h!") + assert "\\end{table}" in styler.to_latex(position="h!") + styler.set_table_styles([{"selector": "position", "props": ":b!"}]) + assert "\\begin{table}[b!]" in styler.to_latex() + assert "\\end{table}" in styler.to_latex() + + +@pytest.mark.parametrize("env", [None, "longtable"]) +def test_label(styler, env): + assert "\n\\label{text}" in styler.to_latex(label="text", environment=env) + styler.set_table_styles([{"selector": "label", "props": ":{more §text}"}]) + assert "\n\\label{more :text}" in styler.to_latex(environment=env) + + +def test_position_float_raises(styler): + msg = "`position_float` should be one of 'raggedright', 'raggedleft', 'centering'," + with pytest.raises(ValueError, match=msg): + styler.to_latex(position_float="bad_string") + + msg = "`position_float` cannot be used in 'longtable' `environment`" + with pytest.raises(ValueError, match=msg): + styler.to_latex(position_float="centering", environment="longtable") + + +@pytest.mark.parametrize("label", [(None, ""), ("text", "\\label{text}")]) +@pytest.mark.parametrize("position", [(None, ""), ("h!", "{table}[h!]")]) +@pytest.mark.parametrize("caption", [(None, ""), ("text", "\\caption{text}")]) +@pytest.mark.parametrize("column_format", [(None, ""), ("rcrl", "{tabular}{rcrl}")]) +@pytest.mark.parametrize("position_float", [(None, ""), ("centering", "\\centering")]) +def test_kwargs_combinations( + styler, label, position, caption, column_format, position_float +): + result = styler.to_latex( + label=label[0], + position=position[0], + caption=caption[0], + column_format=column_format[0], + position_float=position_float[0], + ) + assert label[1] in result + assert position[1] in result + assert caption[1] in result + assert column_format[1] in result + assert position_float[1] in result + + +def test_custom_table_styles(styler): + styler.set_table_styles( + [ + {"selector": "mycommand", "props": ":{myoptions}"}, + {"selector": "mycommand2", "props": ":{myoptions2}"}, + ] + ) + expected = dedent( + """\ + \\begin{table} + \\mycommand{myoptions} + \\mycommand2{myoptions2} + """ + ) + assert expected in styler.to_latex() + + +def test_cell_styling(styler): + styler.highlight_max(props="itshape:;Huge:--wrap;") + expected = dedent( + """\ + \\begin{tabular}{lrrl} + & A & B & C \\\\ + 0 & 0 & \\itshape {\\Huge -0.61} & ab \\\\ + 1 & \\itshape {\\Huge 1} & -1.22 & \\itshape {\\Huge cd} \\\\ + \\end{tabular} + """ + ) + assert expected == styler.to_latex() + + +def test_multiindex_columns(df): + cidx = MultiIndex.from_tuples([("A", "a"), ("A", "b"), ("B", "c")]) + df.columns = cidx + expected = dedent( + """\ + \\begin{tabular}{lrrl} + & \\multicolumn{2}{r}{A} & B \\\\ + & a & b & c \\\\ + 0 & 0 & -0.61 & ab \\\\ + 1 & 1 & -1.22 & cd \\\\ + \\end{tabular} + """ + ) + s = df.style.format(precision=2) + assert expected == s.to_latex() + + # non-sparse + expected = dedent( + """\ + \\begin{tabular}{lrrl} + & A & A & B \\\\ + & a & b & c \\\\ + 0 & 0 & -0.61 & ab \\\\ + 1 & 1 & -1.22 & cd \\\\ + \\end{tabular} + """ + ) + s = df.style.format(precision=2) + assert expected == s.to_latex(sparse_columns=False) + + +def test_multiindex_row(df_ext): + ridx = MultiIndex.from_tuples([("A", "a"), ("A", "b"), ("B", "c")]) + df_ext.index = ridx + expected = dedent( + """\ + \\begin{tabular}{llrrl} + & & A & B & C \\\\ + \\multirow[c]{2}{*}{A} & a & 0 & -0.61 & ab \\\\ + & b & 1 & -1.22 & cd \\\\ + B & c & 2 & -2.22 & de \\\\ + \\end{tabular} + """ + ) + styler = df_ext.style.format(precision=2) + result = styler.to_latex() + assert expected == result + + # non-sparse + expected = dedent( + """\ + \\begin{tabular}{llrrl} + & & A & B & C \\\\ + A & a & 0 & -0.61 & ab \\\\ + A & b & 1 & -1.22 & cd \\\\ + B & c & 2 & -2.22 & de \\\\ + \\end{tabular} + """ + ) + result = styler.to_latex(sparse_index=False) + assert expected == result + + +def test_multirow_naive(df_ext): + ridx = MultiIndex.from_tuples([("X", "x"), ("X", "y"), ("Y", "z")]) + df_ext.index = ridx + expected = dedent( + """\ + \\begin{tabular}{llrrl} + & & A & B & C \\\\ + X & x & 0 & -0.61 & ab \\\\ + & y & 1 & -1.22 & cd \\\\ + Y & z & 2 & -2.22 & de \\\\ + \\end{tabular} + """ + ) + styler = df_ext.style.format(precision=2) + result = styler.to_latex(multirow_align="naive") + assert expected == result + + +def test_multiindex_row_and_col(df_ext): + cidx = MultiIndex.from_tuples([("Z", "a"), ("Z", "b"), ("Y", "c")]) + ridx = MultiIndex.from_tuples([("A", "a"), ("A", "b"), ("B", "c")]) + df_ext.index, df_ext.columns = ridx, cidx + expected = dedent( + """\ + \\begin{tabular}{llrrl} + & & \\multicolumn{2}{l}{Z} & Y \\\\ + & & a & b & c \\\\ + \\multirow[b]{2}{*}{A} & a & 0 & -0.61 & ab \\\\ + & b & 1 & -1.22 & cd \\\\ + B & c & 2 & -2.22 & de \\\\ + \\end{tabular} + """ + ) + styler = df_ext.style.format(precision=2) + result = styler.to_latex(multirow_align="b", multicol_align="l") + assert result == expected + + # non-sparse + expected = dedent( + """\ + \\begin{tabular}{llrrl} + & & Z & Z & Y \\\\ + & & a & b & c \\\\ + A & a & 0 & -0.61 & ab \\\\ + A & b & 1 & -1.22 & cd \\\\ + B & c & 2 & -2.22 & de \\\\ + \\end{tabular} + """ + ) + result = styler.to_latex(sparse_index=False, sparse_columns=False) + assert result == expected + + +@pytest.mark.parametrize( + "multicol_align, siunitx, header", + [ + ("naive-l", False, " & A & &"), + ("naive-r", False, " & & & A"), + ("naive-l", True, "{} & {A} & {} & {}"), + ("naive-r", True, "{} & {} & {} & {A}"), + ], +) +def test_multicol_naive(df, multicol_align, siunitx, header): + ridx = MultiIndex.from_tuples([("A", "a"), ("A", "b"), ("A", "c")]) + df.columns = ridx + level1 = " & a & b & c" if not siunitx else "{} & {a} & {b} & {c}" + col_format = "lrrl" if not siunitx else "lSSl" + expected = dedent( + f"""\ + \\begin{{tabular}}{{{col_format}}} + {header} \\\\ + {level1} \\\\ + 0 & 0 & -0.61 & ab \\\\ + 1 & 1 & -1.22 & cd \\\\ + \\end{{tabular}} + """ + ) + styler = df.style.format(precision=2) + result = styler.to_latex(multicol_align=multicol_align, siunitx=siunitx) + assert expected == result + + +def test_multi_options(df_ext): + cidx = MultiIndex.from_tuples([("Z", "a"), ("Z", "b"), ("Y", "c")]) + ridx = MultiIndex.from_tuples([("A", "a"), ("A", "b"), ("B", "c")]) + df_ext.index, df_ext.columns = ridx, cidx + styler = df_ext.style.format(precision=2) + + expected = dedent( + """\ + & & \\multicolumn{2}{r}{Z} & Y \\\\ + & & a & b & c \\\\ + \\multirow[c]{2}{*}{A} & a & 0 & -0.61 & ab \\\\ + """ + ) + result = styler.to_latex() + assert expected in result + + with option_context("styler.latex.multicol_align", "l"): + assert " & & \\multicolumn{2}{l}{Z} & Y \\\\" in styler.to_latex() + + with option_context("styler.latex.multirow_align", "b"): + assert "\\multirow[b]{2}{*}{A} & a & 0 & -0.61 & ab \\\\" in styler.to_latex() + + +def test_multiindex_columns_hidden(): + df = DataFrame([[1, 2, 3, 4]]) + df.columns = MultiIndex.from_tuples([("A", 1), ("A", 2), ("A", 3), ("B", 1)]) + s = df.style + assert "{tabular}{lrrrr}" in s.to_latex() + s.set_table_styles([]) # reset the position command + s.hide([("A", 2)], axis="columns") + assert "{tabular}{lrrr}" in s.to_latex() + + +@pytest.mark.parametrize( + "option, value", + [ + ("styler.sparse.index", True), + ("styler.sparse.index", False), + ("styler.sparse.columns", True), + ("styler.sparse.columns", False), + ], +) +def test_sparse_options(df_ext, option, value): + cidx = MultiIndex.from_tuples([("Z", "a"), ("Z", "b"), ("Y", "c")]) + ridx = MultiIndex.from_tuples([("A", "a"), ("A", "b"), ("B", "c")]) + df_ext.index, df_ext.columns = ridx, cidx + styler = df_ext.style + + latex1 = styler.to_latex() + with option_context(option, value): + latex2 = styler.to_latex() + assert (latex1 == latex2) is value + + +def test_hidden_index(styler): + styler.hide(axis="index") + expected = dedent( + """\ + \\begin{tabular}{rrl} + A & B & C \\\\ + 0 & -0.61 & ab \\\\ + 1 & -1.22 & cd \\\\ + \\end{tabular} + """ + ) + assert styler.to_latex() == expected + + +@pytest.mark.parametrize("environment", ["table", "figure*", None]) +def test_comprehensive(df_ext, environment): + # test as many low level features simultaneously as possible + cidx = MultiIndex.from_tuples([("Z", "a"), ("Z", "b"), ("Y", "c")]) + ridx = MultiIndex.from_tuples([("A", "a"), ("A", "b"), ("B", "c")]) + df_ext.index, df_ext.columns = ridx, cidx + stlr = df_ext.style + stlr.set_caption("mycap") + stlr.set_table_styles( + [ + {"selector": "label", "props": ":{fig§item}"}, + {"selector": "position", "props": ":h!"}, + {"selector": "position_float", "props": ":centering"}, + {"selector": "column_format", "props": ":rlrlr"}, + {"selector": "toprule", "props": ":toprule"}, + {"selector": "midrule", "props": ":midrule"}, + {"selector": "bottomrule", "props": ":bottomrule"}, + {"selector": "rowcolors", "props": ":{3}{pink}{}"}, # custom command + ] + ) + stlr.highlight_max(axis=0, props="textbf:--rwrap;cellcolor:[rgb]{1,1,0.6}--rwrap") + stlr.highlight_max(axis=None, props="Huge:--wrap;", subset=[("Z", "a"), ("Z", "b")]) + + expected = ( + """\ +\\begin{table}[h!] +\\centering +\\caption{mycap} +\\label{fig:item} +\\rowcolors{3}{pink}{} +\\begin{tabular}{rlrlr} +\\toprule + & & \\multicolumn{2}{r}{Z} & Y \\\\ + & & a & b & c \\\\ +\\midrule +\\multirow[c]{2}{*}{A} & a & 0 & \\textbf{\\cellcolor[rgb]{1,1,0.6}{-0.61}} & ab \\\\ + & b & 1 & -1.22 & cd \\\\ +B & c & \\textbf{\\cellcolor[rgb]{1,1,0.6}{{\\Huge 2}}} & -2.22 & """ + """\ +\\textbf{\\cellcolor[rgb]{1,1,0.6}{de}} \\\\ +\\bottomrule +\\end{tabular} +\\end{table} +""" + ).replace("table", environment if environment else "table") + result = stlr.format(precision=2).to_latex(environment=environment) + assert result == expected + + +def test_environment_option(styler): + with option_context("styler.latex.environment", "bar-env"): + assert "\\begin{bar-env}" in styler.to_latex() + assert "\\begin{foo-env}" in styler.to_latex(environment="foo-env") + + +def test_parse_latex_table_styles(styler): + styler.set_table_styles( + [ + {"selector": "foo", "props": [("attr", "value")]}, + {"selector": "bar", "props": [("attr", "overwritten")]}, + {"selector": "bar", "props": [("attr", "baz"), ("attr2", "ignored")]}, + {"selector": "label", "props": [("", "{fig§item}")]}, + ] + ) + assert _parse_latex_table_styles(styler.table_styles, "bar") == "baz" + + # test '§' replaced by ':' [for CSS compatibility] + assert _parse_latex_table_styles(styler.table_styles, "label") == "{fig:item}" + + +def test_parse_latex_cell_styles_basic(): # test nesting + cell_style = [("itshape", "--rwrap"), ("cellcolor", "[rgb]{0,1,1}--rwrap")] + expected = "\\itshape{\\cellcolor[rgb]{0,1,1}{text}}" + assert _parse_latex_cell_styles(cell_style, "text") == expected + + +@pytest.mark.parametrize( + "wrap_arg, expected", + [ # test wrapping + ("", "\\ "), + ("--wrap", "{\\ }"), + ("--nowrap", "\\ "), + ("--lwrap", "{\\} "), + ("--dwrap", "{\\}{}"), + ("--rwrap", "\\{}"), + ], +) +def test_parse_latex_cell_styles_braces(wrap_arg, expected): + cell_style = [("", f"{wrap_arg}")] + assert _parse_latex_cell_styles(cell_style, "") == expected + + +def test_parse_latex_header_span(): + cell = {"attributes": 'colspan="3"', "display_value": "text", "cellstyle": []} + expected = "\\multicolumn{3}{Y}{text}" + assert _parse_latex_header_span(cell, "X", "Y") == expected + + cell = {"attributes": 'rowspan="5"', "display_value": "text", "cellstyle": []} + expected = "\\multirow[X]{5}{*}{text}" + assert _parse_latex_header_span(cell, "X", "Y") == expected + + cell = {"display_value": "text", "cellstyle": []} + assert _parse_latex_header_span(cell, "X", "Y") == "text" + + cell = {"display_value": "text", "cellstyle": [("bfseries", "--rwrap")]} + assert _parse_latex_header_span(cell, "X", "Y") == "\\bfseries{text}" + + +def test_parse_latex_table_wrapping(styler): + styler.set_table_styles( + [ + {"selector": "toprule", "props": ":value"}, + {"selector": "bottomrule", "props": ":value"}, + {"selector": "midrule", "props": ":value"}, + {"selector": "column_format", "props": ":value"}, + ] + ) + assert _parse_latex_table_wrapping(styler.table_styles, styler.caption) is False + assert _parse_latex_table_wrapping(styler.table_styles, "some caption") is True + styler.set_table_styles( + [ + {"selector": "not-ignored", "props": ":value"}, + ], + overwrite=False, + ) + assert _parse_latex_table_wrapping(styler.table_styles, None) is True + + +def test_short_caption(styler): + result = styler.to_latex(caption=("full cap", "short cap")) + assert "\\caption[short cap]{full cap}" in result + + +@pytest.mark.parametrize( + "css, expected", + [ + ([("color", "red")], [("color", "{red}")]), # test color and input format types + ( + [("color", "rgb(128, 128, 128 )")], + [("color", "[rgb]{0.502, 0.502, 0.502}")], + ), + ( + [("color", "rgb(128, 50%, 25% )")], + [("color", "[rgb]{0.502, 0.500, 0.250}")], + ), + ( + [("color", "rgba(128,128,128,1)")], + [("color", "[rgb]{0.502, 0.502, 0.502}")], + ), + ([("color", "#FF00FF")], [("color", "[HTML]{FF00FF}")]), + ([("color", "#F0F")], [("color", "[HTML]{FF00FF}")]), + ([("font-weight", "bold")], [("bfseries", "")]), # test font-weight and types + ([("font-weight", "bolder")], [("bfseries", "")]), + ([("font-weight", "normal")], []), + ([("background-color", "red")], [("cellcolor", "{red}--lwrap")]), + ( + [("background-color", "#FF00FF")], # test background-color command and wrap + [("cellcolor", "[HTML]{FF00FF}--lwrap")], + ), + ([("font-style", "italic")], [("itshape", "")]), # test font-style and types + ([("font-style", "oblique")], [("slshape", "")]), + ([("font-style", "normal")], []), + ([("color", "red /*--dwrap*/")], [("color", "{red}--dwrap")]), # css comments + ([("background-color", "red /* --dwrap */")], [("cellcolor", "{red}--dwrap")]), + ], +) +def test_parse_latex_css_conversion(css, expected): + result = _parse_latex_css_conversion(css) + assert result == expected + + +@pytest.mark.parametrize( + "env, inner_env", + [ + (None, "tabular"), + ("table", "tabular"), + ("longtable", "longtable"), + ], +) +@pytest.mark.parametrize( + "convert, exp", [(True, "bfseries"), (False, "font-weightbold")] +) +def test_parse_latex_css_convert_minimal(styler, env, inner_env, convert, exp): + # parameters ensure longtable template is also tested + styler.highlight_max(props="font-weight:bold;") + result = styler.to_latex(convert_css=convert, environment=env) + expected = dedent( + f"""\ + 0 & 0 & \\{exp} -0.61 & ab \\\\ + 1 & \\{exp} 1 & -1.22 & \\{exp} cd \\\\ + \\end{{{inner_env}}} + """ + ) + assert expected in result + + +def test_parse_latex_css_conversion_option(): + css = [("command", "option--latex--wrap")] + expected = [("command", "option--wrap")] + result = _parse_latex_css_conversion(css) + assert result == expected + + +def test_styler_object_after_render(styler): + # GH 42320 + pre_render = styler._copy(deepcopy=True) + styler.to_latex( + column_format="rllr", + position="h", + position_float="centering", + hrules=True, + label="my lab", + caption="my cap", + ) + + assert pre_render.table_styles == styler.table_styles + assert pre_render.caption == styler.caption + + +def test_longtable_comprehensive(styler): + result = styler.to_latex( + environment="longtable", hrules=True, label="fig:A", caption=("full", "short") + ) + expected = dedent( + """\ + \\begin{longtable}{lrrl} + \\caption[short]{full} \\label{fig:A} \\\\ + \\toprule + & A & B & C \\\\ + \\midrule + \\endfirsthead + \\caption[]{full} \\\\ + \\toprule + & A & B & C \\\\ + \\midrule + \\endhead + \\midrule + \\multicolumn{4}{r}{Continued on next page} \\\\ + \\midrule + \\endfoot + \\bottomrule + \\endlastfoot + 0 & 0 & -0.61 & ab \\\\ + 1 & 1 & -1.22 & cd \\\\ + \\end{longtable} + """ + ) + assert result == expected + + +def test_longtable_minimal(styler): + result = styler.to_latex(environment="longtable") + expected = dedent( + """\ + \\begin{longtable}{lrrl} + & A & B & C \\\\ + \\endfirsthead + & A & B & C \\\\ + \\endhead + \\multicolumn{4}{r}{Continued on next page} \\\\ + \\endfoot + \\endlastfoot + 0 & 0 & -0.61 & ab \\\\ + 1 & 1 & -1.22 & cd \\\\ + \\end{longtable} + """ + ) + assert result == expected + + +@pytest.mark.parametrize( + "sparse, exp, siunitx", + [ + (True, "{} & \\multicolumn{2}{r}{A} & {B}", True), + (False, "{} & {A} & {A} & {B}", True), + (True, " & \\multicolumn{2}{r}{A} & B", False), + (False, " & A & A & B", False), + ], +) +def test_longtable_multiindex_columns(df, sparse, exp, siunitx): + cidx = MultiIndex.from_tuples([("A", "a"), ("A", "b"), ("B", "c")]) + df.columns = cidx + with_si = "{} & {a} & {b} & {c} \\\\" + without_si = " & a & b & c \\\\" + expected = dedent( + f"""\ + \\begin{{longtable}}{{l{"SS" if siunitx else "rr"}l}} + {exp} \\\\ + {with_si if siunitx else without_si} + \\endfirsthead + {exp} \\\\ + {with_si if siunitx else without_si} + \\endhead + """ + ) + result = df.style.to_latex( + environment="longtable", sparse_columns=sparse, siunitx=siunitx + ) + assert expected in result + + +@pytest.mark.parametrize( + "caption, cap_exp", + [ + ("full", ("{full}", "")), + (("full", "short"), ("{full}", "[short]")), + ], +) +@pytest.mark.parametrize("label, lab_exp", [(None, ""), ("tab:A", " \\label{tab:A}")]) +def test_longtable_caption_label(styler, caption, cap_exp, label, lab_exp): + cap_exp1 = f"\\caption{cap_exp[1]}{cap_exp[0]}" + cap_exp2 = f"\\caption[]{cap_exp[0]}" + + expected = dedent( + f"""\ + {cap_exp1}{lab_exp} \\\\ + & A & B & C \\\\ + \\endfirsthead + {cap_exp2} \\\\ + """ + ) + assert expected in styler.to_latex( + environment="longtable", caption=caption, label=label + ) + + +@pytest.mark.parametrize("index", [True, False]) +@pytest.mark.parametrize( + "columns, siunitx", + [ + (True, True), + (True, False), + (False, False), + ], +) +def test_apply_map_header_render_mi(df_ext, index, columns, siunitx): + cidx = MultiIndex.from_tuples([("Z", "a"), ("Z", "b"), ("Y", "c")]) + ridx = MultiIndex.from_tuples([("A", "a"), ("A", "b"), ("B", "c")]) + df_ext.index, df_ext.columns = ridx, cidx + styler = df_ext.style + + func = lambda v: "bfseries: --rwrap" if "A" in v or "Z" in v or "c" in v else None + + if index: + styler.map_index(func, axis="index") + if columns: + styler.map_index(func, axis="columns") + + result = styler.to_latex(siunitx=siunitx) + + expected_index = dedent( + """\ + \\multirow[c]{2}{*}{\\bfseries{A}} & a & 0 & -0.610000 & ab \\\\ + \\bfseries{} & b & 1 & -1.220000 & cd \\\\ + B & \\bfseries{c} & 2 & -2.220000 & de \\\\ + """ + ) + assert (expected_index in result) is index + + exp_cols_si = dedent( + """\ + {} & {} & \\multicolumn{2}{r}{\\bfseries{Z}} & {Y} \\\\ + {} & {} & {a} & {b} & {\\bfseries{c}} \\\\ + """ + ) + exp_cols_no_si = """\ + & & \\multicolumn{2}{r}{\\bfseries{Z}} & Y \\\\ + & & a & b & \\bfseries{c} \\\\ +""" + assert ((exp_cols_si if siunitx else exp_cols_no_si) in result) is columns + + +def test_repr_option(styler): + assert "