Buckets:
| import collections.abc | |
| from collections.abc import Callable, Collection, Generator, Iterable, Iterator | |
| import contextlib | |
| import os | |
| from pathlib import Path | |
| from matplotlib.artist import Artist | |
| import numpy as np | |
| from numpy.typing import ArrayLike | |
| from typing import ( | |
| Any, | |
| Generic, | |
| IO, | |
| Literal, | |
| TypeVar, | |
| overload, | |
| ) | |
| _T = TypeVar("_T") | |
| def _get_running_interactive_framework() -> str | None: ... | |
| class CallbackRegistry: | |
| exception_handler: Callable[[Exception], Any] | |
| callbacks: dict[Any, dict[int, Any]] | |
| def __init__( | |
| self, | |
| exception_handler: Callable[[Exception], Any] | None = ..., | |
| *, | |
| signals: Iterable[Any] | None = ..., | |
| ) -> None: ... | |
| def connect(self, signal: Any, func: Callable) -> int: ... | |
| def disconnect(self, cid: int) -> None: ... | |
| def process(self, s: Any, *args, **kwargs) -> None: ... | |
| def blocked( | |
| self, *, signal: Any | None = ... | |
| ) -> contextlib.AbstractContextManager[None]: ... | |
| class silent_list(list[_T]): | |
| type: str | None | |
| def __init__(self, type: str | None, seq: Iterable[_T] | None = ...) -> None: ... | |
| def strip_math(s: str) -> str: ... | |
| def is_writable_file_like(obj: Any) -> bool: ... | |
| def file_requires_unicode(x: Any) -> bool: ... | |
| def to_filehandle( | |
| fname: str | os.PathLike | IO, | |
| flag: str = ..., | |
| return_opened: Literal[False] = ..., | |
| encoding: str | None = ..., | |
| ) -> IO: ... | |
| def to_filehandle( | |
| fname: str | os.PathLike | IO, | |
| flag: str, | |
| return_opened: Literal[True], | |
| encoding: str | None = ..., | |
| ) -> tuple[IO, bool]: ... | |
| def to_filehandle( | |
| fname: str | os.PathLike | IO, | |
| *, # if flag given, will match previous sig | |
| return_opened: Literal[True], | |
| encoding: str | None = ..., | |
| ) -> tuple[IO, bool]: ... | |
| def open_file_cm( | |
| path_or_file: str | os.PathLike | IO, | |
| mode: str = ..., | |
| encoding: str | None = ..., | |
| ) -> contextlib.AbstractContextManager[IO]: ... | |
| def is_scalar_or_string(val: Any) -> bool: ... | |
| def get_sample_data( | |
| fname: str | os.PathLike, asfileobj: Literal[True] = ... | |
| ) -> np.ndarray | IO: ... | |
| def get_sample_data(fname: str | os.PathLike, asfileobj: Literal[False]) -> str: ... | |
| def _get_data_path(*args: Path | str) -> Path: ... | |
| def flatten( | |
| seq: Iterable[Any], scalarp: Callable[[Any], bool] = ... | |
| ) -> Generator[Any, None, None]: ... | |
| class _Stack(Generic[_T]): | |
| def __init__(self) -> None: ... | |
| def clear(self) -> None: ... | |
| def __call__(self) -> _T: ... | |
| def __len__(self) -> int: ... | |
| def __getitem__(self, ind: int) -> _T: ... | |
| def forward(self) -> _T: ... | |
| def back(self) -> _T: ... | |
| def push(self, o: _T) -> _T: ... | |
| def home(self) -> _T: ... | |
| def safe_masked_invalid(x: ArrayLike, copy: bool = ...) -> np.ndarray: ... | |
| def print_cycles( | |
| objects: Iterable[Any], outstream: IO = ..., show_progress: bool = ... | |
| ) -> None: ... | |
| class Grouper(Generic[_T]): | |
| def __init__(self, init: Iterable[_T] = ...) -> None: ... | |
| def __contains__(self, item: _T) -> bool: ... | |
| def join(self, a: _T, *args: _T) -> None: ... | |
| def joined(self, a: _T, b: _T) -> bool: ... | |
| def remove(self, a: _T) -> None: ... | |
| def __iter__(self) -> Iterator[list[_T]]: ... | |
| def get_siblings(self, a: _T) -> list[_T]: ... | |
| class GrouperView(Generic[_T]): | |
| def __init__(self, grouper: Grouper[_T]) -> None: ... | |
| def __contains__(self, item: _T) -> bool: ... | |
| def __iter__(self) -> Iterator[list[_T]]: ... | |
| def joined(self, a: _T, b: _T) -> bool: ... | |
| def get_siblings(self, a: _T) -> list[_T]: ... | |
| def simple_linear_interpolation(a: ArrayLike, steps: int) -> np.ndarray: ... | |
| def delete_masked_points(*args): ... | |
| def _broadcast_with_masks(*args: ArrayLike, compress: bool = ...) -> list[ArrayLike]: ... | |
| def boxplot_stats( | |
| X: ArrayLike, | |
| whis: float | tuple[float, float] = ..., | |
| bootstrap: int | None = ..., | |
| labels: ArrayLike | None = ..., | |
| autorange: bool = ..., | |
| ) -> list[dict[str, Any]]: ... | |
| ls_mapper: dict[str, str] | |
| ls_mapper_r: dict[str, str] | |
| def contiguous_regions(mask: ArrayLike) -> list[np.ndarray]: ... | |
| def is_math_text(s: str) -> bool: ... | |
| def violin_stats( | |
| X: ArrayLike, method: Callable, points: int = ..., quantiles: ArrayLike | None = ... | |
| ) -> list[dict[str, Any]]: ... | |
| def pts_to_prestep(x: ArrayLike, *args: ArrayLike) -> np.ndarray: ... | |
| def pts_to_poststep(x: ArrayLike, *args: ArrayLike) -> np.ndarray: ... | |
| def pts_to_midstep(x: np.ndarray, *args: np.ndarray) -> np.ndarray: ... | |
| STEP_LOOKUP_MAP: dict[str, Callable] | |
| def index_of(y: float | ArrayLike) -> tuple[np.ndarray, np.ndarray]: ... | |
| def safe_first_element(obj: Collection[_T]) -> _T: ... | |
| def sanitize_sequence(data): ... | |
| def normalize_kwargs( | |
| kw: dict[str, Any], | |
| alias_mapping: dict[str, list[str]] | type[Artist] | Artist | None = ..., | |
| ) -> dict[str, Any]: ... | |
| def _lock_path(path: str | os.PathLike) -> contextlib.AbstractContextManager[None]: ... | |
| def _str_equal(obj: Any, s: str) -> bool: ... | |
| def _str_lower_equal(obj: Any, s: str) -> bool: ... | |
| def _array_perimeter(arr: np.ndarray) -> np.ndarray: ... | |
| def _unfold(arr: np.ndarray, axis: int, size: int, step: int) -> np.ndarray: ... | |
| def _array_patch_perimeters(x: np.ndarray, rstride: int, cstride: int) -> np.ndarray: ... | |
| def _setattr_cm(obj: Any, **kwargs) -> contextlib.AbstractContextManager[None]: ... | |
| class _OrderedSet(collections.abc.MutableSet): | |
| def __init__(self) -> None: ... | |
| def __contains__(self, key) -> bool: ... | |
| def __iter__(self): ... | |
| def __len__(self) -> int: ... | |
| def add(self, key) -> None: ... | |
| def discard(self, key) -> None: ... | |
| def _setup_new_guiapp() -> None: ... | |
| def _format_approx(number: float, precision: int) -> str: ... | |
| def _g_sig_digits(value: float, delta: float) -> int: ... | |
| def _unikey_or_keysym_to_mplkey(unikey: str, keysym: str) -> str: ... | |
| def _is_torch_array(x: Any) -> bool: ... | |
| def _is_jax_array(x: Any) -> bool: ... | |
| def _unpack_to_numpy(x: Any) -> Any: ... | |
| def _auto_format_str(fmt: str, value: Any) -> str: ... | |
Xet Storage Details
- Size:
- 6.04 kB
- Xet hash:
- 93cc7014677fdd4a54820699cf5d960de5dede57f17cbd55700a55333f700f56
·
Xet efficiently stores files, intelligently splitting them into unique chunks and accelerating uploads and downloads. More info.