| | import builtins |
| | import sys |
| | import os |
| | import mmap |
| | import ctypes as ct |
| | import array as _array |
| | import datetime as dt |
| | import enum |
| | from abc import abstractmethod |
| | from types import TracebackType, MappingProxyType, GenericAlias |
| | from contextlib import ContextDecorator |
| | from contextlib import contextmanager |
| |
|
| | from numpy._pytesttester import PytestTester |
| | from numpy.core._internal import _ctypes |
| |
|
| | from numpy._typing import ( |
| | # Arrays |
| | ArrayLike, |
| | NDArray, |
| | _SupportsArray, |
| | _NestedSequence, |
| | _FiniteNestedSequence, |
| | _SupportsArray, |
| | _ArrayLikeBool_co, |
| | _ArrayLikeUInt_co, |
| | _ArrayLikeInt_co, |
| | _ArrayLikeFloat_co, |
| | _ArrayLikeComplex_co, |
| | _ArrayLikeNumber_co, |
| | _ArrayLikeTD64_co, |
| | _ArrayLikeDT64_co, |
| | _ArrayLikeObject_co, |
| | _ArrayLikeStr_co, |
| | _ArrayLikeBytes_co, |
| | _ArrayLikeUnknown, |
| | _UnknownType, |
| |
|
| | # DTypes |
| | DTypeLike, |
| | _DTypeLike, |
| | _DTypeLikeVoid, |
| | _SupportsDType, |
| | _VoidDTypeLike, |
| |
|
| | # Shapes |
| | _Shape, |
| | _ShapeLike, |
| |
|
| | # Scalars |
| | _CharLike_co, |
| | _BoolLike_co, |
| | _IntLike_co, |
| | _FloatLike_co, |
| | _ComplexLike_co, |
| | _TD64Like_co, |
| | _NumberLike_co, |
| | _ScalarLike_co, |
| |
|
| | # `number` precision |
| | NBitBase, |
| | _256Bit, |
| | _128Bit, |
| | _96Bit, |
| | _80Bit, |
| | _64Bit, |
| | _32Bit, |
| | _16Bit, |
| | _8Bit, |
| | _NBitByte, |
| | _NBitShort, |
| | _NBitIntC, |
| | _NBitIntP, |
| | _NBitInt, |
| | _NBitLongLong, |
| | _NBitHalf, |
| | _NBitSingle, |
| | _NBitDouble, |
| | _NBitLongDouble, |
| |
|
| | # Character codes |
| | _BoolCodes, |
| | _UInt8Codes, |
| | _UInt16Codes, |
| | _UInt32Codes, |
| | _UInt64Codes, |
| | _Int8Codes, |
| | _Int16Codes, |
| | _Int32Codes, |
| | _Int64Codes, |
| | _Float16Codes, |
| | _Float32Codes, |
| | _Float64Codes, |
| | _Complex64Codes, |
| | _Complex128Codes, |
| | _ByteCodes, |
| | _ShortCodes, |
| | _IntCCodes, |
| | _IntPCodes, |
| | _IntCodes, |
| | _LongLongCodes, |
| | _UByteCodes, |
| | _UShortCodes, |
| | _UIntCCodes, |
| | _UIntPCodes, |
| | _UIntCodes, |
| | _ULongLongCodes, |
| | _HalfCodes, |
| | _SingleCodes, |
| | _DoubleCodes, |
| | _LongDoubleCodes, |
| | _CSingleCodes, |
| | _CDoubleCodes, |
| | _CLongDoubleCodes, |
| | _DT64Codes, |
| | _TD64Codes, |
| | _StrCodes, |
| | _BytesCodes, |
| | _VoidCodes, |
| | _ObjectCodes, |
| |
|
| | # Ufuncs |
| | _UFunc_Nin1_Nout1, |
| | _UFunc_Nin2_Nout1, |
| | _UFunc_Nin1_Nout2, |
| | _UFunc_Nin2_Nout2, |
| | _GUFunc_Nin2_Nout1, |
| | ) |
| |
|
| | from numpy._typing._callable import ( |
| | _BoolOp, |
| | _BoolBitOp, |
| | _BoolSub, |
| | _BoolTrueDiv, |
| | _BoolMod, |
| | _BoolDivMod, |
| | _TD64Div, |
| | _IntTrueDiv, |
| | _UnsignedIntOp, |
| | _UnsignedIntBitOp, |
| | _UnsignedIntMod, |
| | _UnsignedIntDivMod, |
| | _SignedIntOp, |
| | _SignedIntBitOp, |
| | _SignedIntMod, |
| | _SignedIntDivMod, |
| | _FloatOp, |
| | _FloatMod, |
| | _FloatDivMod, |
| | _ComplexOp, |
| | _NumberOp, |
| | _ComparisonOp, |
| | ) |
| |
|
| | # NOTE: Numpy's mypy plugin is used for removing the types unavailable |
| | # to the specific platform |
| | from numpy._typing._extended_precision import ( |
| | uint128 as uint128, |
| | uint256 as uint256, |
| | int128 as int128, |
| | int256 as int256, |
| | float80 as float80, |
| | float96 as float96, |
| | float128 as float128, |
| | float256 as float256, |
| | complex160 as complex160, |
| | complex192 as complex192, |
| | complex256 as complex256, |
| | complex512 as complex512, |
| | ) |
| |
|
| | from collections.abc import ( |
| | Callable, |
| | Container, |
| | Iterable, |
| | Iterator, |
| | Mapping, |
| | Sequence, |
| | Sized, |
| | ) |
| | from typing import ( |
| | Literal as L, |
| | Any, |
| | Generator, |
| | Generic, |
| | IO, |
| | NoReturn, |
| | overload, |
| | SupportsComplex, |
| | SupportsFloat, |
| | SupportsInt, |
| | TypeVar, |
| | Union, |
| | Protocol, |
| | SupportsIndex, |
| | Final, |
| | final, |
| | ClassVar, |
| | ) |
| |
|
| | # Ensures that the stubs are picked up |
| | from numpy import ( |
| | ctypeslib as ctypeslib, |
| | exceptions as exceptions, |
| | fft as fft, |
| | lib as lib, |
| | linalg as linalg, |
| | ma as ma, |
| | polynomial as polynomial, |
| | random as random, |
| | testing as testing, |
| | version as version, |
| | exceptions as exceptions, |
| | dtypes as dtypes, |
| | ) |
| |
|
| | from numpy.core import defchararray, records |
| | char = defchararray |
| | rec = records |
| |
|
| | from numpy.core.function_base import ( |
| | linspace as linspace, |
| | logspace as logspace, |
| | geomspace as geomspace, |
| | ) |
| |
|
| | from numpy.core.fromnumeric import ( |
| | take as take, |
| | reshape as reshape, |
| | choose as choose, |
| | repeat as repeat, |
| | put as put, |
| | swapaxes as swapaxes, |
| | transpose as transpose, |
| | partition as partition, |
| | argpartition as argpartition, |
| | sort as sort, |
| | argsort as argsort, |
| | argmax as argmax, |
| | argmin as argmin, |
| | searchsorted as searchsorted, |
| | resize as resize, |
| | squeeze as squeeze, |
| | diagonal as diagonal, |
| | trace as trace, |
| | ravel as ravel, |
| | nonzero as nonzero, |
| | shape as shape, |
| | compress as compress, |
| | clip as clip, |
| | sum as sum, |
| | all as all, |
| | any as any, |
| | cumsum as cumsum, |
| | ptp as ptp, |
| | max as max, |
| | min as min, |
| | amax as amax, |
| | amin as amin, |
| | prod as prod, |
| | cumprod as cumprod, |
| | ndim as ndim, |
| | size as size, |
| | around as around, |
| | round as round, |
| | mean as mean, |
| | std as std, |
| | var as var, |
| | ) |
| |
|
| | from numpy.core._asarray import ( |
| | require as require, |
| | ) |
| |
|
| | from numpy.core._type_aliases import ( |
| | sctypes as sctypes, |
| | sctypeDict as sctypeDict, |
| | ) |
| |
|
| | from numpy.core._ufunc_config import ( |
| | seterr as seterr, |
| | geterr as geterr, |
| | setbufsize as setbufsize, |
| | getbufsize as getbufsize, |
| | seterrcall as seterrcall, |
| | geterrcall as geterrcall, |
| | _ErrKind, |
| | _ErrFunc, |
| | _ErrDictOptional, |
| | ) |
| |
|
| | from numpy.core.arrayprint import ( |
| | set_printoptions as set_printoptions, |
| | get_printoptions as get_printoptions, |
| | array2string as array2string, |
| | format_float_scientific as format_float_scientific, |
| | format_float_positional as format_float_positional, |
| | array_repr as array_repr, |
| | array_str as array_str, |
| | set_string_function as set_string_function, |
| | printoptions as printoptions, |
| | ) |
| |
|
| | from numpy.core.einsumfunc import ( |
| | einsum as einsum, |
| | einsum_path as einsum_path, |
| | ) |
| |
|
| | from numpy.core.multiarray import ( |
| | ALLOW_THREADS as ALLOW_THREADS, |
| | BUFSIZE as BUFSIZE, |
| | CLIP as CLIP, |
| | MAXDIMS as MAXDIMS, |
| | MAY_SHARE_BOUNDS as MAY_SHARE_BOUNDS, |
| | MAY_SHARE_EXACT as MAY_SHARE_EXACT, |
| | RAISE as RAISE, |
| | WRAP as WRAP, |
| | tracemalloc_domain as tracemalloc_domain, |
| | array as array, |
| | empty_like as empty_like, |
| | empty as empty, |
| | zeros as zeros, |
| | concatenate as concatenate, |
| | inner as inner, |
| | where as where, |
| | lexsort as lexsort, |
| | can_cast as can_cast, |
| | min_scalar_type as min_scalar_type, |
| | result_type as result_type, |
| | dot as dot, |
| | vdot as vdot, |
| | bincount as bincount, |
| | copyto as copyto, |
| | putmask as putmask, |
| | packbits as packbits, |
| | unpackbits as unpackbits, |
| | shares_memory as shares_memory, |
| | may_share_memory as may_share_memory, |
| | asarray as asarray, |
| | asanyarray as asanyarray, |
| | ascontiguousarray as ascontiguousarray, |
| | asfortranarray as asfortranarray, |
| | arange as arange, |
| | busday_count as busday_count, |
| | busday_offset as busday_offset, |
| | compare_chararrays as compare_chararrays, |
| | datetime_as_string as datetime_as_string, |
| | datetime_data as datetime_data, |
| | frombuffer as frombuffer, |
| | fromfile as fromfile, |
| | fromiter as fromiter, |
| | is_busday as is_busday, |
| | promote_types as promote_types, |
| | seterrobj as seterrobj, |
| | geterrobj as geterrobj, |
| | fromstring as fromstring, |
| | frompyfunc as frompyfunc, |
| | nested_iters as nested_iters, |
| | flagsobj, |
| | ) |
| |
|
| | from numpy.core.numeric import ( |
| | zeros_like as zeros_like, |
| | ones as ones, |
| | ones_like as ones_like, |
| | full as full, |
| | full_like as full_like, |
| | count_nonzero as count_nonzero, |
| | isfortran as isfortran, |
| | argwhere as argwhere, |
| | flatnonzero as flatnonzero, |
| | correlate as correlate, |
| | convolve as convolve, |
| | outer as outer, |
| | tensordot as tensordot, |
| | roll as roll, |
| | rollaxis as rollaxis, |
| | moveaxis as moveaxis, |
| | cross as cross, |
| | indices as indices, |
| | fromfunction as fromfunction, |
| | isscalar as isscalar, |
| | binary_repr as binary_repr, |
| | base_repr as base_repr, |
| | identity as identity, |
| | allclose as allclose, |
| | isclose as isclose, |
| | array_equal as array_equal, |
| | array_equiv as array_equiv, |
| | ) |
| |
|
| | from numpy.core.numerictypes import ( |
| | maximum_sctype as maximum_sctype, |
| | issctype as issctype, |
| | obj2sctype as obj2sctype, |
| | issubclass_ as issubclass_, |
| | issubsctype as issubsctype, |
| | issubdtype as issubdtype, |
| | sctype2char as sctype2char, |
| | nbytes as nbytes, |
| | cast as cast, |
| | ScalarType as ScalarType, |
| | typecodes as typecodes, |
| | ) |
| |
|
| | from numpy.core.shape_base import ( |
| | atleast_1d as atleast_1d, |
| | atleast_2d as atleast_2d, |
| | atleast_3d as atleast_3d, |
| | block as block, |
| | hstack as hstack, |
| | stack as stack, |
| | vstack as vstack, |
| | ) |
| |
|
| | from numpy.exceptions import ( |
| | ComplexWarning as ComplexWarning, |
| | ModuleDeprecationWarning as ModuleDeprecationWarning, |
| | VisibleDeprecationWarning as VisibleDeprecationWarning, |
| | TooHardError as TooHardError, |
| | DTypePromotionError as DTypePromotionError, |
| | AxisError as AxisError, |
| | ) |
| |
|
| | from numpy.lib import ( |
| | emath as emath, |
| | ) |
| |
|
| | from numpy.lib.arraypad import ( |
| | pad as pad, |
| | ) |
| |
|
| | from numpy.lib.arraysetops import ( |
| | ediff1d as ediff1d, |
| | intersect1d as intersect1d, |
| | setxor1d as setxor1d, |
| | union1d as union1d, |
| | setdiff1d as setdiff1d, |
| | unique as unique, |
| | in1d as in1d, |
| | isin as isin, |
| | ) |
| |
|
| | from numpy.lib.arrayterator import ( |
| | Arrayterator as Arrayterator, |
| | ) |
| |
|
| | from numpy.lib.function_base import ( |
| | select as select, |
| | piecewise as piecewise, |
| | trim_zeros as trim_zeros, |
| | copy as copy, |
| | iterable as iterable, |
| | percentile as percentile, |
| | diff as diff, |
| | gradient as gradient, |
| | angle as angle, |
| | unwrap as unwrap, |
| | sort_complex as sort_complex, |
| | disp as disp, |
| | flip as flip, |
| | rot90 as rot90, |
| | extract as extract, |
| | place as place, |
| | asarray_chkfinite as asarray_chkfinite, |
| | average as average, |
| | bincount as bincount, |
| | digitize as digitize, |
| | cov as cov, |
| | corrcoef as corrcoef, |
| | median as median, |
| | sinc as sinc, |
| | hamming as hamming, |
| | hanning as hanning, |
| | bartlett as bartlett, |
| | blackman as blackman, |
| | kaiser as kaiser, |
| | trapz as trapz, |
| | i0 as i0, |
| | add_newdoc as add_newdoc, |
| | add_docstring as add_docstring, |
| | meshgrid as meshgrid, |
| | delete as delete, |
| | insert as insert, |
| | append as append, |
| | interp as interp, |
| | add_newdoc_ufunc as add_newdoc_ufunc, |
| | quantile as quantile, |
| | ) |
| |
|
| | from numpy.lib.histograms import ( |
| | histogram_bin_edges as histogram_bin_edges, |
| | histogram as histogram, |
| | histogramdd as histogramdd, |
| | ) |
| |
|
| | from numpy.lib.index_tricks import ( |
| | ravel_multi_index as ravel_multi_index, |
| | unravel_index as unravel_index, |
| | mgrid as mgrid, |
| | ogrid as ogrid, |
| | r_ as r_, |
| | c_ as c_, |
| | s_ as s_, |
| | index_exp as index_exp, |
| | ix_ as ix_, |
| | fill_diagonal as fill_diagonal, |
| | diag_indices as diag_indices, |
| | diag_indices_from as diag_indices_from, |
| | ) |
| |
|
| | from numpy.lib.nanfunctions import ( |
| | nansum as nansum, |
| | nanmax as nanmax, |
| | nanmin as nanmin, |
| | nanargmax as nanargmax, |
| | nanargmin as nanargmin, |
| | nanmean as nanmean, |
| | nanmedian as nanmedian, |
| | nanpercentile as nanpercentile, |
| | nanvar as nanvar, |
| | nanstd as nanstd, |
| | nanprod as nanprod, |
| | nancumsum as nancumsum, |
| | nancumprod as nancumprod, |
| | nanquantile as nanquantile, |
| | ) |
| |
|
| | from numpy.lib.npyio import ( |
| | savetxt as savetxt, |
| | loadtxt as loadtxt, |
| | genfromtxt as genfromtxt, |
| | recfromtxt as recfromtxt, |
| | recfromcsv as recfromcsv, |
| | load as load, |
| | save as save, |
| | savez as savez, |
| | savez_compressed as savez_compressed, |
| | packbits as packbits, |
| | unpackbits as unpackbits, |
| | fromregex as fromregex, |
| | ) |
| |
|
| | from numpy.lib.polynomial import ( |
| | poly as poly, |
| | roots as roots, |
| | polyint as polyint, |
| | polyder as polyder, |
| | polyadd as polyadd, |
| | polysub as polysub, |
| | polymul as polymul, |
| | polydiv as polydiv, |
| | polyval as polyval, |
| | polyfit as polyfit, |
| | ) |
| |
|
| | from numpy.lib.shape_base import ( |
| | column_stack as column_stack, |
| | row_stack as row_stack, |
| | dstack as dstack, |
| | array_split as array_split, |
| | split as split, |
| | hsplit as hsplit, |
| | vsplit as vsplit, |
| | dsplit as dsplit, |
| | apply_over_axes as apply_over_axes, |
| | expand_dims as expand_dims, |
| | apply_along_axis as apply_along_axis, |
| | kron as kron, |
| | tile as tile, |
| | get_array_wrap as get_array_wrap, |
| | take_along_axis as take_along_axis, |
| | put_along_axis as put_along_axis, |
| | ) |
| |
|
| | from numpy.lib.stride_tricks import ( |
| | broadcast_to as broadcast_to, |
| | broadcast_arrays as broadcast_arrays, |
| | broadcast_shapes as broadcast_shapes, |
| | ) |
| |
|
| | from numpy.lib.twodim_base import ( |
| | diag as diag, |
| | diagflat as diagflat, |
| | eye as eye, |
| | fliplr as fliplr, |
| | flipud as flipud, |
| | tri as tri, |
| | triu as triu, |
| | tril as tril, |
| | vander as vander, |
| | histogram2d as histogram2d, |
| | mask_indices as mask_indices, |
| | tril_indices as tril_indices, |
| | tril_indices_from as tril_indices_from, |
| | triu_indices as triu_indices, |
| | triu_indices_from as triu_indices_from, |
| | ) |
| |
|
| | from numpy.lib.type_check import ( |
| | mintypecode as mintypecode, |
| | asfarray as asfarray, |
| | real as real, |
| | imag as imag, |
| | iscomplex as iscomplex, |
| | isreal as isreal, |
| | iscomplexobj as iscomplexobj, |
| | isrealobj as isrealobj, |
| | nan_to_num as nan_to_num, |
| | real_if_close as real_if_close, |
| | typename as typename, |
| | common_type as common_type, |
| | ) |
| |
|
| | from numpy.lib.ufunclike import ( |
| | fix as fix, |
| | isposinf as isposinf, |
| | isneginf as isneginf, |
| | ) |
| |
|
| | from numpy.lib.utils import ( |
| | issubclass_ as issubclass_, |
| | issubsctype as issubsctype, |
| | issubdtype as issubdtype, |
| | deprecate as deprecate, |
| | deprecate_with_doc as deprecate_with_doc, |
| | get_include as get_include, |
| | info as info, |
| | source as source, |
| | who as who, |
| | lookfor as lookfor, |
| | byte_bounds as byte_bounds, |
| | safe_eval as safe_eval, |
| | show_runtime as show_runtime, |
| | ) |
| |
|
| | from numpy.matrixlib import ( |
| | asmatrix as asmatrix, |
| | mat as mat, |
| | bmat as bmat, |
| | ) |
| |
|
| | _AnyStr_contra = TypeVar("_AnyStr_contra", str, bytes, contravariant=True) |
| |
|
| | # Protocol for representing file-like-objects accepted |
| | # by `ndarray.tofile` and `fromfile` |
| | class _IOProtocol(Protocol): |
| | def flush(self) -> object: ... |
| | def fileno(self) -> int: ... |
| | def tell(self) -> SupportsIndex: ... |
| | def seek(self, offset: int, whence: int, /) -> object: ... |
| |
|
| | # NOTE: `seek`, `write` and `flush` are technically only required |
| | # for `readwrite`/`write` modes |
| | class _MemMapIOProtocol(Protocol): |
| | def flush(self) -> object: ... |
| | def fileno(self) -> SupportsIndex: ... |
| | def tell(self) -> int: ... |
| | def seek(self, offset: int, whence: int, /) -> object: ... |
| | def write(self, s: bytes, /) -> object: ... |
| | @property |
| | def read(self) -> object: ... |
| |
|
| | class _SupportsWrite(Protocol[_AnyStr_contra]): |
| | def write(self, s: _AnyStr_contra, /) -> object: ... |
| |
|
| | __all__: list[str] |
| | __path__: list[str] |
| | __version__: str |
| | test: PytestTester |
| |
|
| | # TODO: Move placeholders to their respective module once |
| | # their annotations are properly implemented |
| | # |
| | # Placeholders for classes |
| |
|
| | def show_config() -> None: ... |
| |
|
| | _NdArraySubClass = TypeVar("_NdArraySubClass", bound=ndarray[Any, Any]) |
| | _DTypeScalar_co = TypeVar("_DTypeScalar_co", covariant=True, bound=generic) |
| | _ByteOrder = L["S", "<", ">", "=", "|", "L", "B", "N", "I"] |
| |
|
| | @final |
| | class dtype(Generic[_DTypeScalar_co]): |
| | names: None | tuple[builtins.str, ...] |
| | def __hash__(self) -> int: ... |
| | # Overload for subclass of generic |
| | @overload |
| | def __new__( |
| | cls, |
| | dtype: type[_DTypeScalar_co], |
| | align: bool = ..., |
| | copy: bool = ..., |
| | metadata: dict[builtins.str, Any] = ..., |
| | ) -> dtype[_DTypeScalar_co]: ... |
| | # Overloads for string aliases, Python types, and some assorted |
| | # other special cases. Order is sometimes important because of the |
| | # subtype relationships |
| | # |
| | # bool < int < float < complex < object |
| | # |
| | # so we have to make sure the overloads for the narrowest type is |
| | # first. |
| | # Builtin types |
| | @overload |
| | def __new__(cls, dtype: type[bool], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[bool_]: ... |
| | @overload |
| | def __new__(cls, dtype: type[int], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[int_]: ... |
| | @overload |
| | def __new__(cls, dtype: None | type[float], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[float_]: ... |
| | @overload |
| | def __new__(cls, dtype: type[complex], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[complex_]: ... |
| | @overload |
| | def __new__(cls, dtype: type[builtins.str], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[str_]: ... |
| | @overload |
| | def __new__(cls, dtype: type[bytes], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[bytes_]: ... |
| |
|
| | # `unsignedinteger` string-based representations and ctypes |
| | @overload |
| | def __new__(cls, dtype: _UInt8Codes | type[ct.c_uint8], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[uint8]: ... |
| | @overload |
| | def __new__(cls, dtype: _UInt16Codes | type[ct.c_uint16], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[uint16]: ... |
| | @overload |
| | def __new__(cls, dtype: _UInt32Codes | type[ct.c_uint32], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[uint32]: ... |
| | @overload |
| | def __new__(cls, dtype: _UInt64Codes | type[ct.c_uint64], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[uint64]: ... |
| | @overload |
| | def __new__(cls, dtype: _UByteCodes | type[ct.c_ubyte], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[ubyte]: ... |
| | @overload |
| | def __new__(cls, dtype: _UShortCodes | type[ct.c_ushort], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[ushort]: ... |
| | @overload |
| | def __new__(cls, dtype: _UIntCCodes | type[ct.c_uint], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[uintc]: ... |
| |
|
| | # NOTE: We're assuming here that `uint_ptr_t == size_t`, |
| | # an assumption that does not hold in rare cases (same for `ssize_t`) |
| | @overload |
| | def __new__(cls, dtype: _UIntPCodes | type[ct.c_void_p] | type[ct.c_size_t], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[uintp]: ... |
| | @overload |
| | def __new__(cls, dtype: _UIntCodes | type[ct.c_ulong], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[uint]: ... |
| | @overload |
| | def __new__(cls, dtype: _ULongLongCodes | type[ct.c_ulonglong], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[ulonglong]: ... |
| |
|
| | # `signedinteger` string-based representations and ctypes |
| | @overload |
| | def __new__(cls, dtype: _Int8Codes | type[ct.c_int8], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[int8]: ... |
| | @overload |
| | def __new__(cls, dtype: _Int16Codes | type[ct.c_int16], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[int16]: ... |
| | @overload |
| | def __new__(cls, dtype: _Int32Codes | type[ct.c_int32], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[int32]: ... |
| | @overload |
| | def __new__(cls, dtype: _Int64Codes | type[ct.c_int64], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[int64]: ... |
| | @overload |
| | def __new__(cls, dtype: _ByteCodes | type[ct.c_byte], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[byte]: ... |
| | @overload |
| | def __new__(cls, dtype: _ShortCodes | type[ct.c_short], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[short]: ... |
| | @overload |
| | def __new__(cls, dtype: _IntCCodes | type[ct.c_int], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[intc]: ... |
| | @overload |
| | def __new__(cls, dtype: _IntPCodes | type[ct.c_ssize_t], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[intp]: ... |
| | @overload |
| | def __new__(cls, dtype: _IntCodes | type[ct.c_long], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[int_]: ... |
| | @overload |
| | def __new__(cls, dtype: _LongLongCodes | type[ct.c_longlong], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[longlong]: ... |
| |
|
| | # `floating` string-based representations and ctypes |
| | @overload |
| | def __new__(cls, dtype: _Float16Codes, align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[float16]: ... |
| | @overload |
| | def __new__(cls, dtype: _Float32Codes, align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[float32]: ... |
| | @overload |
| | def __new__(cls, dtype: _Float64Codes, align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[float64]: ... |
| | @overload |
| | def __new__(cls, dtype: _HalfCodes, align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[half]: ... |
| | @overload |
| | def __new__(cls, dtype: _SingleCodes | type[ct.c_float], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[single]: ... |
| | @overload |
| | def __new__(cls, dtype: _DoubleCodes | type[ct.c_double], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[double]: ... |
| | @overload |
| | def __new__(cls, dtype: _LongDoubleCodes | type[ct.c_longdouble], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[longdouble]: ... |
| |
|
| | # `complexfloating` string-based representations |
| | @overload |
| | def __new__(cls, dtype: _Complex64Codes, align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[complex64]: ... |
| | @overload |
| | def __new__(cls, dtype: _Complex128Codes, align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[complex128]: ... |
| | @overload |
| | def __new__(cls, dtype: _CSingleCodes, align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[csingle]: ... |
| | @overload |
| | def __new__(cls, dtype: _CDoubleCodes, align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[cdouble]: ... |
| | @overload |
| | def __new__(cls, dtype: _CLongDoubleCodes, align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[clongdouble]: ... |
| |
|
| | # Miscellaneous string-based representations and ctypes |
| | @overload |
| | def __new__(cls, dtype: _BoolCodes | type[ct.c_bool], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[bool_]: ... |
| | @overload |
| | def __new__(cls, dtype: _TD64Codes, align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[timedelta64]: ... |
| | @overload |
| | def __new__(cls, dtype: _DT64Codes, align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[datetime64]: ... |
| | @overload |
| | def __new__(cls, dtype: _StrCodes, align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[str_]: ... |
| | @overload |
| | def __new__(cls, dtype: _BytesCodes | type[ct.c_char], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[bytes_]: ... |
| | @overload |
| | def __new__(cls, dtype: _VoidCodes, align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[void]: ... |
| | @overload |
| | def __new__(cls, dtype: _ObjectCodes | type[ct.py_object[Any]], align: bool = ..., copy: bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[object_]: ... |
| |
|
| | # dtype of a dtype is the same dtype |
| | @overload |
| | def __new__( |
| | cls, |
| | dtype: dtype[_DTypeScalar_co], |
| | align: bool = ..., |
| | copy: bool = ..., |
| | metadata: dict[builtins.str, Any] = ..., |
| | ) -> dtype[_DTypeScalar_co]: ... |
| | @overload |
| | def __new__( |
| | cls, |
| | dtype: _SupportsDType[dtype[_DTypeScalar_co]], |
| | align: bool = ..., |
| | copy: bool = ..., |
| | metadata: dict[builtins.str, Any] = ..., |
| | ) -> dtype[_DTypeScalar_co]: ... |
| | # Handle strings that can't be expressed as literals |
| | @overload |
| | def __new__( |
| | cls, |
| | dtype: builtins.str, |
| | align: bool = ..., |
| | copy: bool = ..., |
| | metadata: dict[builtins.str, Any] = ..., |
| | ) -> dtype[Any]: ... |
| | # Catchall overload for void-likes |
| | @overload |
| | def __new__( |
| | cls, |
| | dtype: _VoidDTypeLike, |
| | align: bool = ..., |
| | copy: bool = ..., |
| | metadata: dict[builtins.str, Any] = ..., |
| | ) -> dtype[void]: ... |
| | # Catchall overload for object-likes |
| | @overload |
| | def __new__( |
| | cls, |
| | dtype: type[object], |
| | align: bool = ..., |
| | copy: bool = ..., |
| | metadata: dict[builtins.str, Any] = ..., |
| | ) -> dtype[object_]: ... |
| |
|
| | def __class_getitem__(self, item: Any) -> GenericAlias: ... |
| |
|
| | @overload |
| | def __getitem__(self: dtype[void], key: list[builtins.str]) -> dtype[void]: ... |
| | @overload |
| | def __getitem__(self: dtype[void], key: builtins.str | SupportsIndex) -> dtype[Any]: ... |
| |
|
| | # NOTE: In the future 1-based multiplications will also yield `flexible` dtypes |
| | @overload |
| | def __mul__(self: _DType, value: L[1]) -> _DType: ... |
| | @overload |
| | def __mul__(self: _FlexDType, value: SupportsIndex) -> _FlexDType: ... |
| | @overload |
| | def __mul__(self, value: SupportsIndex) -> dtype[void]: ... |
| |
|
| | # NOTE: `__rmul__` seems to be broken when used in combination with |
| | # literals as of mypy 0.902. Set the return-type to `dtype[Any]` for |
| | # now for non-flexible dtypes. |
| | @overload |
| | def __rmul__(self: _FlexDType, value: SupportsIndex) -> _FlexDType: ... |
| | @overload |
| | def __rmul__(self, value: SupportsIndex) -> dtype[Any]: ... |
| |
|
| | def __gt__(self, other: DTypeLike) -> bool: ... |
| | def __ge__(self, other: DTypeLike) -> bool: ... |
| | def __lt__(self, other: DTypeLike) -> bool: ... |
| | def __le__(self, other: DTypeLike) -> bool: ... |
| |
|
| | # Explicitly defined `__eq__` and `__ne__` to get around mypy's |
| | # `strict_equality` option |
| | # identical to their `object`-based counterpart |
| | def __eq__(self, other: Any) -> bool: ... |
| | def __ne__(self, other: Any) -> bool: ... |
| |
|
| | @property |
| | def alignment(self) -> int: ... |
| | @property |
| | def base(self) -> dtype[Any]: ... |
| | @property |
| | def byteorder(self) -> builtins.str: ... |
| | @property |
| | def char(self) -> builtins.str: ... |
| | @property |
| | def descr(self) -> list[tuple[builtins.str, builtins.str] | tuple[builtins.str, builtins.str, _Shape]]: ... |
| | @property |
| | def fields( |
| | self, |
| | ) -> None | MappingProxyType[builtins.str, tuple[dtype[Any], int] | tuple[dtype[Any], int, Any]]: ... |
| | @property |
| | def flags(self) -> int: ... |
| | @property |
| | def hasobject(self) -> bool: ... |
| | @property |
| | def isbuiltin(self) -> int: ... |
| | @property |
| | def isnative(self) -> bool: ... |
| | @property |
| | def isalignedstruct(self) -> bool: ... |
| | @property |
| | def itemsize(self) -> int: ... |
| | @property |
| | def kind(self) -> builtins.str: ... |
| | @property |
| | def metadata(self) -> None | MappingProxyType[builtins.str, Any]: ... |
| | @property |
| | def name(self) -> builtins.str: ... |
| | @property |
| | def num(self) -> int: ... |
| | @property |
| | def shape(self) -> _Shape: ... |
| | @property |
| | def ndim(self) -> int: ... |
| | @property |
| | def subdtype(self) -> None | tuple[dtype[Any], _Shape]: ... |
| | def newbyteorder(self: _DType, __new_order: _ByteOrder = ...) -> _DType: ... |
| | @property |
| | def str(self) -> builtins.str: ... |
| | @property |
| | def type(self) -> type[_DTypeScalar_co]: ... |
| |
|
| | _ArrayLikeInt = Union[ |
| | int, |
| | integer[Any], |
| | Sequence[Union[int, integer[Any]]], |
| | Sequence[Sequence[Any]], # TODO: wait for support for recursive types |
| | ndarray[Any, Any] |
| | ] |
| |
|
| | _FlatIterSelf = TypeVar("_FlatIterSelf", bound=flatiter[Any]) |
| |
|
| | @final |
| | class flatiter(Generic[_NdArraySubClass]): |
| | __hash__: ClassVar[None] |
| | @property |
| | def base(self) -> _NdArraySubClass: ... |
| | @property |
| | def coords(self) -> _Shape: ... |
| | @property |
| | def index(self) -> int: ... |
| | def copy(self) -> _NdArraySubClass: ... |
| | def __iter__(self: _FlatIterSelf) -> _FlatIterSelf: ... |
| | def __next__(self: flatiter[ndarray[Any, dtype[_ScalarType]]]) -> _ScalarType: ... |
| | def __len__(self) -> int: ... |
| | @overload |
| | def __getitem__( |
| | self: flatiter[ndarray[Any, dtype[_ScalarType]]], |
| | key: int | integer[Any] | tuple[int | integer[Any]], |
| | ) -> _ScalarType: ... |
| | @overload |
| | def __getitem__( |
| | self, |
| | key: _ArrayLikeInt | slice | ellipsis | tuple[_ArrayLikeInt | slice | ellipsis], |
| | ) -> _NdArraySubClass: ... |
| | # TODO: `__setitem__` operates via `unsafe` casting rules, and can |
| | # thus accept any type accepted by the relevant underlying `np.generic` |
| | # constructor. |
| | # This means that `value` must in reality be a supertype of `npt.ArrayLike`. |
| | def __setitem__( |
| | self, |
| | key: _ArrayLikeInt | slice | ellipsis | tuple[_ArrayLikeInt | slice | ellipsis], |
| | value: Any, |
| | ) -> None: ... |
| | @overload |
| | def __array__(self: flatiter[ndarray[Any, _DType]], dtype: None = ..., /) -> ndarray[Any, _DType]: ... |
| | @overload |
| | def __array__(self, dtype: _DType, /) -> ndarray[Any, _DType]: ... |
| |
|
| | _OrderKACF = L[None, "K", "A", "C", "F"] |
| | _OrderACF = L[None, "A", "C", "F"] |
| | _OrderCF = L[None, "C", "F"] |
| |
|
| | _ModeKind = L["raise", "wrap", "clip"] |
| | _PartitionKind = L["introselect"] |
| | _SortKind = L["quicksort", "mergesort", "heapsort", "stable"] |
| | _SortSide = L["left", "right"] |
| |
|
| | _ArraySelf = TypeVar("_ArraySelf", bound=_ArrayOrScalarCommon) |
| |
|
| | class _ArrayOrScalarCommon: |
| | @property |
| | def T(self: _ArraySelf) -> _ArraySelf: ... |
| | @property |
| | def data(self) -> memoryview: ... |
| | @property |
| | def flags(self) -> flagsobj: ... |
| | @property |
| | def itemsize(self) -> int: ... |
| | @property |
| | def nbytes(self) -> int: ... |
| | def __bool__(self) -> bool: ... |
| | def __bytes__(self) -> bytes: ... |
| | def __str__(self) -> str: ... |
| | def __repr__(self) -> str: ... |
| | def __copy__(self: _ArraySelf) -> _ArraySelf: ... |
| | def __deepcopy__(self: _ArraySelf, memo: None | dict[int, Any], /) -> _ArraySelf: ... |
| |
|
| | # TODO: How to deal with the non-commutative nature of `==` and `!=`? |
| | # xref numpy/numpy#17368 |
| | def __eq__(self, other: Any) -> Any: ... |
| | def __ne__(self, other: Any) -> Any: ... |
| | def copy(self: _ArraySelf, order: _OrderKACF = ...) -> _ArraySelf: ... |
| | def dump(self, file: str | bytes | os.PathLike[str] | os.PathLike[bytes] | _SupportsWrite[bytes]) -> None: ... |
| | def dumps(self) -> bytes: ... |
| | def tobytes(self, order: _OrderKACF = ...) -> bytes: ... |
| | # NOTE: `tostring()` is deprecated and therefore excluded |
| | # def tostring(self, order=...): ... |
| | def tofile( |
| | self, |
| | fid: str | bytes | os.PathLike[str] | os.PathLike[bytes] | _IOProtocol, |
| | sep: str = ..., |
| | format: str = ..., |
| | ) -> None: ... |
| | # generics and 0d arrays return builtin scalars |
| | def tolist(self) -> Any: ... |
| |
|
| | @property |
| | def __array_interface__(self) -> dict[str, Any]: ... |
| | @property |
| | def __array_priority__(self) -> float: ... |
| | @property |
| | def __array_struct__(self) -> Any: ... # builtins.PyCapsule |
| | def __setstate__(self, state: tuple[ |
| | SupportsIndex, # version |
| | _ShapeLike, # Shape |
| | _DType_co, # DType |
| | bool, # F-continuous |
| | bytes | list[Any], # Data |
| | ], /) -> None: ... |
| | # a `bool_` is returned when `keepdims=True` and `self` is a 0d array |
| |
|
| | @overload |
| | def all( |
| | self, |
| | axis: None = ..., |
| | out: None = ..., |
| | keepdims: L[False] = ..., |
| | *, |
| | where: _ArrayLikeBool_co = ..., |
| | ) -> bool_: ... |
| | @overload |
| | def all( |
| | self, |
| | axis: None | _ShapeLike = ..., |
| | out: None = ..., |
| | keepdims: bool = ..., |
| | *, |
| | where: _ArrayLikeBool_co = ..., |
| | ) -> Any: ... |
| | @overload |
| | def all( |
| | self, |
| | axis: None | _ShapeLike = ..., |
| | out: _NdArraySubClass = ..., |
| | keepdims: bool = ..., |
| | *, |
| | where: _ArrayLikeBool_co = ..., |
| | ) -> _NdArraySubClass: ... |
| |
|
| | @overload |
| | def any( |
| | self, |
| | axis: None = ..., |
| | out: None = ..., |
| | keepdims: L[False] = ..., |
| | *, |
| | where: _ArrayLikeBool_co = ..., |
| | ) -> bool_: ... |
| | @overload |
| | def any( |
| | self, |
| | axis: None | _ShapeLike = ..., |
| | out: None = ..., |
| | keepdims: bool = ..., |
| | *, |
| | where: _ArrayLikeBool_co = ..., |
| | ) -> Any: ... |
| | @overload |
| | def any( |
| | self, |
| | axis: None | _ShapeLike = ..., |
| | out: _NdArraySubClass = ..., |
| | keepdims: bool = ..., |
| | *, |
| | where: _ArrayLikeBool_co = ..., |
| | ) -> _NdArraySubClass: ... |
| |
|
| | @overload |
| | def argmax( |
| | self, |
| | axis: None = ..., |
| | out: None = ..., |
| | *, |
| | keepdims: L[False] = ..., |
| | ) -> intp: ... |
| | @overload |
| | def argmax( |
| | self, |
| | axis: SupportsIndex = ..., |
| | out: None = ..., |
| | *, |
| | keepdims: bool = ..., |
| | ) -> Any: ... |
| | @overload |
| | def argmax( |
| | self, |
| | axis: None | SupportsIndex = ..., |
| | out: _NdArraySubClass = ..., |
| | *, |
| | keepdims: bool = ..., |
| | ) -> _NdArraySubClass: ... |
| |
|
| | @overload |
| | def argmin( |
| | self, |
| | axis: None = ..., |
| | out: None = ..., |
| | *, |
| | keepdims: L[False] = ..., |
| | ) -> intp: ... |
| | @overload |
| | def argmin( |
| | self, |
| | axis: SupportsIndex = ..., |
| | out: None = ..., |
| | *, |
| | keepdims: bool = ..., |
| | ) -> Any: ... |
| | @overload |
| | def argmin( |
| | self, |
| | axis: None | SupportsIndex = ..., |
| | out: _NdArraySubClass = ..., |
| | *, |
| | keepdims: bool = ..., |
| | ) -> _NdArraySubClass: ... |
| |
|
| | def argsort( |
| | self, |
| | axis: None | SupportsIndex = ..., |
| | kind: None | _SortKind = ..., |
| | order: None | str | Sequence[str] = ..., |
| | ) -> ndarray[Any, Any]: ... |
| |
|
| | @overload |
| | def choose( |
| | self, |
| | choices: ArrayLike, |
| | out: None = ..., |
| | mode: _ModeKind = ..., |
| | ) -> ndarray[Any, Any]: ... |
| | @overload |
| | def choose( |
| | self, |
| | choices: ArrayLike, |
| | out: _NdArraySubClass = ..., |
| | mode: _ModeKind = ..., |
| | ) -> _NdArraySubClass: ... |
| |
|
| | @overload |
| | def clip( |
| | self, |
| | min: ArrayLike = ..., |
| | max: None | ArrayLike = ..., |
| | out: None = ..., |
| | **kwargs: Any, |
| | ) -> ndarray[Any, Any]: ... |
| | @overload |
| | def clip( |
| | self, |
| | min: None = ..., |
| | max: ArrayLike = ..., |
| | out: None = ..., |
| | **kwargs: Any, |
| | ) -> ndarray[Any, Any]: ... |
| | @overload |
| | def clip( |
| | self, |
| | min: ArrayLike = ..., |
| | max: None | ArrayLike = ..., |
| | out: _NdArraySubClass = ..., |
| | **kwargs: Any, |
| | ) -> _NdArraySubClass: ... |
| | @overload |
| | def clip( |
| | self, |
| | min: None = ..., |
| | max: ArrayLike = ..., |
| | out: _NdArraySubClass = ..., |
| | **kwargs: Any, |
| | ) -> _NdArraySubClass: ... |
| |
|
| | @overload |
| | def compress( |
| | self, |
| | a: ArrayLike, |
| | axis: None | SupportsIndex = ..., |
| | out: None = ..., |
| | ) -> ndarray[Any, Any]: ... |
| | @overload |
| | def compress( |
| | self, |
| | a: ArrayLike, |
| | axis: None | SupportsIndex = ..., |
| | out: _NdArraySubClass = ..., |
| | ) -> _NdArraySubClass: ... |
| |
|
| | def conj(self: _ArraySelf) -> _ArraySelf: ... |
| |
|
| | def conjugate(self: _ArraySelf) -> _ArraySelf: ... |
| |
|
| | @overload |
| | def cumprod( |
| | self, |
| | axis: None | SupportsIndex = ..., |
| | dtype: DTypeLike = ..., |
| | out: None = ..., |
| | ) -> ndarray[Any, Any]: ... |
| | @overload |
| | def cumprod( |
| | self, |
| | axis: None | SupportsIndex = ..., |
| | dtype: DTypeLike = ..., |
| | out: _NdArraySubClass = ..., |
| | ) -> _NdArraySubClass: ... |
| |
|
| | @overload |
| | def cumsum( |
| | self, |
| | axis: None | SupportsIndex = ..., |
| | dtype: DTypeLike = ..., |
| | out: None = ..., |
| | ) -> ndarray[Any, Any]: ... |
| | @overload |
| | def cumsum( |
| | self, |
| | axis: None | SupportsIndex = ..., |
| | dtype: DTypeLike = ..., |
| | out: _NdArraySubClass = ..., |
| | ) -> _NdArraySubClass: ... |
| |
|
| | @overload |
| | def max( |
| | self, |
| | axis: None | _ShapeLike = ..., |
| | out: None = ..., |
| | keepdims: bool = ..., |
| | initial: _NumberLike_co = ..., |
| | where: _ArrayLikeBool_co = ..., |
| | ) -> Any: ... |
| | @overload |
| | def max( |
| | self, |
| | axis: None | _ShapeLike = ..., |
| | out: _NdArraySubClass = ..., |
| | keepdims: bool = ..., |
| | initial: _NumberLike_co = ..., |
| | where: _ArrayLikeBool_co = ..., |
| | ) -> _NdArraySubClass: ... |
| |
|
| | @overload |
| | def mean( |
| | self, |
| | axis: None | _ShapeLike = ..., |
| | dtype: DTypeLike = ..., |
| | out: None = ..., |
| | keepdims: bool = ..., |
| | *, |
| | where: _ArrayLikeBool_co = ..., |
| | ) -> Any: ... |
| | @overload |
| | def mean( |
| | self, |
| | axis: None | _ShapeLike = ..., |
| | dtype: DTypeLike = ..., |
| | out: _NdArraySubClass = ..., |
| | keepdims: bool = ..., |
| | *, |
| | where: _ArrayLikeBool_co = ..., |
| | ) -> _NdArraySubClass: ... |
| |
|
| | @overload |
| | def min( |
| | self, |
| | axis: None | _ShapeLike = ..., |
| | out: None = ..., |
| | keepdims: bool = ..., |
| | initial: _NumberLike_co = ..., |
| | where: _ArrayLikeBool_co = ..., |
| | ) -> Any: ... |
| | @overload |
| | def min( |
| | self, |
| | axis: None | _ShapeLike = ..., |
| | out: _NdArraySubClass = ..., |
| | keepdims: bool = ..., |
| | initial: _NumberLike_co = ..., |
| | where: _ArrayLikeBool_co = ..., |
| | ) -> _NdArraySubClass: ... |
| |
|
| | def newbyteorder( |
| | self: _ArraySelf, |
| | __new_order: _ByteOrder = ..., |
| | ) -> _ArraySelf: ... |
| |
|
| | @overload |
| | def prod( |
| | self, |
| | axis: None | _ShapeLike = ..., |
| | dtype: DTypeLike = ..., |
| | out: None = ..., |
| | keepdims: bool = ..., |
| | initial: _NumberLike_co = ..., |
| | where: _ArrayLikeBool_co = ..., |
| | ) -> Any: ... |
| | @overload |
| | def prod( |
| | self, |
| | axis: None | _ShapeLike = ..., |
| | dtype: DTypeLike = ..., |
| | out: _NdArraySubClass = ..., |
| | keepdims: bool = ..., |
| | initial: _NumberLike_co = ..., |
| | where: _ArrayLikeBool_co = ..., |
| | ) -> _NdArraySubClass: ... |
| |
|
| | @overload |
| | def ptp( |
| | self, |
| | axis: None | _ShapeLike = ..., |
| | out: None = ..., |
| | keepdims: bool = ..., |
| | ) -> Any: ... |
| | @overload |
| | def ptp( |
| | self, |
| | axis: None | _ShapeLike = ..., |
| | out: _NdArraySubClass = ..., |
| | keepdims: bool = ..., |
| | ) -> _NdArraySubClass: ... |
| |
|
| | @overload |
| | def round( |
| | self: _ArraySelf, |
| | decimals: SupportsIndex = ..., |
| | out: None = ..., |
| | ) -> _ArraySelf: ... |
| | @overload |
| | def round( |
| | self, |
| | decimals: SupportsIndex = ..., |
| | out: _NdArraySubClass = ..., |
| | ) -> _NdArraySubClass: ... |
| |
|
| | @overload |
| | def std( |
| | self, |
| | axis: None | _ShapeLike = ..., |
| | dtype: DTypeLike = ..., |
| | out: None = ..., |
| | ddof: float = ..., |
| | keepdims: bool = ..., |
| | *, |
| | where: _ArrayLikeBool_co = ..., |
| | ) -> Any: ... |
| | @overload |
| | def std( |
| | self, |
| | axis: None | _ShapeLike = ..., |
| | dtype: DTypeLike = ..., |
| | out: _NdArraySubClass = ..., |
| | ddof: float = ..., |
| | keepdims: bool = ..., |
| | *, |
| | where: _ArrayLikeBool_co = ..., |
| | ) -> _NdArraySubClass: ... |
| |
|
| | @overload |
| | def sum( |
| | self, |
| | axis: None | _ShapeLike = ..., |
| | dtype: DTypeLike = ..., |
| | out: None = ..., |
| | keepdims: bool = ..., |
| | initial: _NumberLike_co = ..., |
| | where: _ArrayLikeBool_co = ..., |
| | ) -> Any: ... |
| | @overload |
| | def sum( |
| | self, |
| | axis: None | _ShapeLike = ..., |
| | dtype: DTypeLike = ..., |
| | out: _NdArraySubClass = ..., |
| | keepdims: bool = ..., |
| | initial: _NumberLike_co = ..., |
| | where: _ArrayLikeBool_co = ..., |
| | ) -> _NdArraySubClass: ... |
| |
|
| | @overload |
| | def var( |
| | self, |
| | axis: None | _ShapeLike = ..., |
| | dtype: DTypeLike = ..., |
| | out: None = ..., |
| | ddof: float = ..., |
| | keepdims: bool = ..., |
| | *, |
| | where: _ArrayLikeBool_co = ..., |
| | ) -> Any: ... |
| | @overload |
| | def var( |
| | self, |
| | axis: None | _ShapeLike = ..., |
| | dtype: DTypeLike = ..., |
| | out: _NdArraySubClass = ..., |
| | ddof: float = ..., |
| | keepdims: bool = ..., |
| | *, |
| | where: _ArrayLikeBool_co = ..., |
| | ) -> _NdArraySubClass: ... |
| |
|
| | _DType = TypeVar("_DType", bound=dtype[Any]) |
| | _DType_co = TypeVar("_DType_co", covariant=True, bound=dtype[Any]) |
| | _FlexDType = TypeVar("_FlexDType", bound=dtype[flexible]) |
| |
|
| | # TODO: Set the `bound` to something more suitable once we |
| | # have proper shape support |
| | _ShapeType = TypeVar("_ShapeType", bound=Any) |
| | _ShapeType2 = TypeVar("_ShapeType2", bound=Any) |
| | _NumberType = TypeVar("_NumberType", bound=number[Any]) |
| |
|
| | if sys.version_info >= (3, 12): |
| | from collections.abc import Buffer as _SupportsBuffer |
| | else: |
| | _SupportsBuffer = ( |
| | bytes |
| | | bytearray |
| | | memoryview |
| | | _array.array[Any] |
| | | mmap.mmap |
| | | NDArray[Any] |
| | | generic |
| | ) |
| |
|
| | _T = TypeVar("_T") |
| | _T_co = TypeVar("_T_co", covariant=True) |
| | _T_contra = TypeVar("_T_contra", contravariant=True) |
| | _2Tuple = tuple[_T, _T] |
| | _CastingKind = L["no", "equiv", "safe", "same_kind", "unsafe"] |
| |
|
| | _ArrayUInt_co = NDArray[Union[bool_, unsignedinteger[Any]]] |
| | _ArrayInt_co = NDArray[Union[bool_, integer[Any]]] |
| | _ArrayFloat_co = NDArray[Union[bool_, integer[Any], floating[Any]]] |
| | _ArrayComplex_co = NDArray[Union[bool_, integer[Any], floating[Any], complexfloating[Any, Any]]] |
| | _ArrayNumber_co = NDArray[Union[bool_, number[Any]]] |
| | _ArrayTD64_co = NDArray[Union[bool_, integer[Any], timedelta64]] |
| |
|
| | # Introduce an alias for `dtype` to avoid naming conflicts. |
| | _dtype = dtype |
| |
|
| | # `builtins.PyCapsule` unfortunately lacks annotations as of the moment |
| | # use `Any` as a stopgap measure |
| | _PyCapsule = Any |
| |
|
| | class _SupportsItem(Protocol[_T_co]): |
| | def item(self, args: Any, /) -> _T_co: ... |
| |
|
| | class _SupportsReal(Protocol[_T_co]): |
| | @property |
| | def real(self) -> _T_co: ... |
| |
|
| | class _SupportsImag(Protocol[_T_co]): |
| | @property |
| | def imag(self) -> _T_co: ... |
| |
|
| | class ndarray(_ArrayOrScalarCommon, Generic[_ShapeType, _DType_co]): |
| | __hash__: ClassVar[None] |
| | @property |
| | def base(self) -> None | ndarray[Any, Any]: ... |
| | @property |
| | def ndim(self) -> int: ... |
| | @property |
| | def size(self) -> int: ... |
| | @property |
| | def real( |
| | self: ndarray[_ShapeType, dtype[_SupportsReal[_ScalarType]]], # type: ignore[type-var] |
| | ) -> ndarray[_ShapeType, _dtype[_ScalarType]]: ... |
| | @real.setter |
| | def real(self, value: ArrayLike) -> None: ... |
| | @property |
| | def imag( |
| | self: ndarray[_ShapeType, dtype[_SupportsImag[_ScalarType]]], # type: ignore[type-var] |
| | ) -> ndarray[_ShapeType, _dtype[_ScalarType]]: ... |
| | @imag.setter |
| | def imag(self, value: ArrayLike) -> None: ... |
| | def __new__( |
| | cls: type[_ArraySelf], |
| | shape: _ShapeLike, |
| | dtype: DTypeLike = ..., |
| | buffer: None | _SupportsBuffer = ..., |
| | offset: SupportsIndex = ..., |
| | strides: None | _ShapeLike = ..., |
| | order: _OrderKACF = ..., |
| | ) -> _ArraySelf: ... |
| |
|
| | if sys.version_info >= (3, 12): |
| | def __buffer__(self, flags: int, /) -> memoryview: ... |
| |
|
| | def __class_getitem__(self, item: Any) -> GenericAlias: ... |
| |
|
| | @overload |
| | def __array__(self, dtype: None = ..., /) -> ndarray[Any, _DType_co]: ... |
| | @overload |
| | def __array__(self, dtype: _DType, /) -> ndarray[Any, _DType]: ... |
| |
|
| | def __array_ufunc__( |
| | self, |
| | ufunc: ufunc, |
| | method: L["__call__", "reduce", "reduceat", "accumulate", "outer", "inner"], |
| | *inputs: Any, |
| | **kwargs: Any, |
| | ) -> Any: ... |
| |
|
| | def __array_function__( |
| | self, |
| | func: Callable[..., Any], |
| | types: Iterable[type], |
| | args: Iterable[Any], |
| | kwargs: Mapping[str, Any], |
| | ) -> Any: ... |
| |
|
| | # NOTE: In practice any object is accepted by `obj`, but as `__array_finalize__` |
| | # is a pseudo-abstract method the type has been narrowed down in order to |
| | # grant subclasses a bit more flexibility |
| | def __array_finalize__(self, obj: None | NDArray[Any], /) -> None: ... |
| |
|
| | def __array_wrap__( |
| | self, |
| | array: ndarray[_ShapeType2, _DType], |
| | context: None | tuple[ufunc, tuple[Any, ...], int] = ..., |
| | /, |
| | ) -> ndarray[_ShapeType2, _DType]: ... |
| |
|
| | def __array_prepare__( |
| | self, |
| | array: ndarray[_ShapeType2, _DType], |
| | context: None | tuple[ufunc, tuple[Any, ...], int] = ..., |
| | /, |
| | ) -> ndarray[_ShapeType2, _DType]: ... |
| |
|
| | @overload |
| | def __getitem__(self, key: ( |
| | NDArray[integer[Any]] |
| | | NDArray[bool_] |
| | | tuple[NDArray[integer[Any]] | NDArray[bool_], ...] |
| | )) -> ndarray[Any, _DType_co]: ... |
| | @overload |
| | def __getitem__(self, key: SupportsIndex | tuple[SupportsIndex, ...]) -> Any: ... |
| | @overload |
| | def __getitem__(self, key: ( |
| | None |
| | | slice |
| | | ellipsis |
| | | SupportsIndex |
| | | _ArrayLikeInt_co |
| | | tuple[None | slice | ellipsis | _ArrayLikeInt_co | SupportsIndex, ...] |
| | )) -> ndarray[Any, _DType_co]: ... |
| | @overload |
| | def __getitem__(self: NDArray[void], key: str) -> NDArray[Any]: ... |
| | @overload |
| | def __getitem__(self: NDArray[void], key: list[str]) -> ndarray[_ShapeType, _dtype[void]]: ... |
| |
|
| | @property |
| | def ctypes(self) -> _ctypes[int]: ... |
| | @property |
| | def shape(self) -> _Shape: ... |
| | @shape.setter |
| | def shape(self, value: _ShapeLike) -> None: ... |
| | @property |
| | def strides(self) -> _Shape: ... |
| | @strides.setter |
| | def strides(self, value: _ShapeLike) -> None: ... |
| | def byteswap(self: _ArraySelf, inplace: bool = ...) -> _ArraySelf: ... |
| | def fill(self, value: Any) -> None: ... |
| | @property |
| | def flat(self: _NdArraySubClass) -> flatiter[_NdArraySubClass]: ... |
| |
|
| | # Use the same output type as that of the underlying `generic` |
| | @overload |
| | def item( |
| | self: ndarray[Any, _dtype[_SupportsItem[_T]]], # type: ignore[type-var] |
| | *args: SupportsIndex, |
| | ) -> _T: ... |
| | @overload |
| | def item( |
| | self: ndarray[Any, _dtype[_SupportsItem[_T]]], # type: ignore[type-var] |
| | args: tuple[SupportsIndex, ...], |
| | /, |
| | ) -> _T: ... |
| |
|
| | @overload |
| | def itemset(self, value: Any, /) -> None: ... |
| | @overload |
| | def itemset(self, item: _ShapeLike, value: Any, /) -> None: ... |
| |
|
| | @overload |
| | def resize(self, new_shape: _ShapeLike, /, *, refcheck: bool = ...) -> None: ... |
| | @overload |
| | def resize(self, *new_shape: SupportsIndex, refcheck: bool = ...) -> None: ... |
| |
|
| | def setflags( |
| | self, write: bool = ..., align: bool = ..., uic: bool = ... |
| | ) -> None: ... |
| |
|
| | def squeeze( |
| | self, |
| | axis: None | SupportsIndex | tuple[SupportsIndex, ...] = ..., |
| | ) -> ndarray[Any, _DType_co]: ... |
| |
|
| | def swapaxes( |
| | self, |
| | axis1: SupportsIndex, |
| | axis2: SupportsIndex, |
| | ) -> ndarray[Any, _DType_co]: ... |
| |
|
| | @overload |
| | def transpose(self: _ArraySelf, axes: None | _ShapeLike, /) -> _ArraySelf: ... |
| | @overload |
| | def transpose(self: _ArraySelf, *axes: SupportsIndex) -> _ArraySelf: ... |
| |
|
| | def argpartition( |
| | self, |
| | kth: _ArrayLikeInt_co, |
| | axis: None | SupportsIndex = ..., |
| | kind: _PartitionKind = ..., |
| | order: None | str | Sequence[str] = ..., |
| | ) -> ndarray[Any, _dtype[intp]]: ... |
| |
|
| | def diagonal( |
| | self, |
| | offset: SupportsIndex = ..., |
| | axis1: SupportsIndex = ..., |
| | axis2: SupportsIndex = ..., |
| | ) -> ndarray[Any, _DType_co]: ... |
| |
|
| | # 1D + 1D returns a scalar |
| | # all other with at least 1 non-0D array return an ndarray. |
| | @overload |
| | def dot(self, b: _ScalarLike_co, out: None = ...) -> ndarray[Any, Any]: ... |
| | @overload |
| | def dot(self, b: ArrayLike, out: None = ...) -> Any: ... # type: ignore[misc] |
| | @overload |
| | def dot(self, b: ArrayLike, out: _NdArraySubClass) -> _NdArraySubClass: ... |
| |
|
| | # `nonzero()` is deprecated for 0d arrays/generics |
| | def nonzero(self) -> tuple[ndarray[Any, _dtype[intp]], ...]: ... |
| |
|
| | def partition( |
| | self, |
| | kth: _ArrayLikeInt_co, |
| | axis: SupportsIndex = ..., |
| | kind: _PartitionKind = ..., |
| | order: None | str | Sequence[str] = ..., |
| | ) -> None: ... |
| |
|
| | # `put` is technically available to `generic`, |
| | # but is pointless as `generic`s are immutable |
| | def put( |
| | self, |
| | ind: _ArrayLikeInt_co, |
| | v: ArrayLike, |
| | mode: _ModeKind = ..., |
| | ) -> None: ... |
| |
|
| | @overload |
| | def searchsorted( # type: ignore[misc] |
| | self, # >= 1D array |
| | v: _ScalarLike_co, # 0D array-like |
| | side: _SortSide = ..., |
| | sorter: None | _ArrayLikeInt_co = ..., |
| | ) -> intp: ... |
| | @overload |
| | def searchsorted( |
| | self, # >= 1D array |
| | v: ArrayLike, |
| | side: _SortSide = ..., |
| | sorter: None | _ArrayLikeInt_co = ..., |
| | ) -> ndarray[Any, _dtype[intp]]: ... |
| |
|
| | def setfield( |
| | self, |
| | val: ArrayLike, |
| | dtype: DTypeLike, |
| | offset: SupportsIndex = ..., |
| | ) -> None: ... |
| |
|
| | def sort( |
| | self, |
| | axis: SupportsIndex = ..., |
| | kind: None | _SortKind = ..., |
| | order: None | str | Sequence[str] = ..., |
| | ) -> None: ... |
| |
|
| | @overload |
| | def trace( |
| | self, # >= 2D array |
| | offset: SupportsIndex = ..., |
| | axis1: SupportsIndex = ..., |
| | axis2: SupportsIndex = ..., |
| | dtype: DTypeLike = ..., |
| | out: None = ..., |
| | ) -> Any: ... |
| | @overload |
| | def trace( |
| | self, # >= 2D array |
| | offset: SupportsIndex = ..., |
| | axis1: SupportsIndex = ..., |
| | axis2: SupportsIndex = ..., |
| | dtype: DTypeLike = ..., |
| | out: _NdArraySubClass = ..., |
| | ) -> _NdArraySubClass: ... |
| |
|
| | @overload |
| | def take( # type: ignore[misc] |
| | self: ndarray[Any, _dtype[_ScalarType]], |
| | indices: _IntLike_co, |
| | axis: None | SupportsIndex = ..., |
| | out: None = ..., |
| | mode: _ModeKind = ..., |
| | ) -> _ScalarType: ... |
| | @overload |
| | def take( # type: ignore[misc] |
| | self, |
| | indices: _ArrayLikeInt_co, |
| | axis: None | SupportsIndex = ..., |
| | out: None = ..., |
| | mode: _ModeKind = ..., |
| | ) -> ndarray[Any, _DType_co]: ... |
| | @overload |
| | def take( |
| | self, |
| | indices: _ArrayLikeInt_co, |
| | axis: None | SupportsIndex = ..., |
| | out: _NdArraySubClass = ..., |
| | mode: _ModeKind = ..., |
| | ) -> _NdArraySubClass: ... |
| |
|
| | def repeat( |
| | self, |
| | repeats: _ArrayLikeInt_co, |
| | axis: None | SupportsIndex = ..., |
| | ) -> ndarray[Any, _DType_co]: ... |
| |
|
| | def flatten( |
| | self, |
| | order: _OrderKACF = ..., |
| | ) -> ndarray[Any, _DType_co]: ... |
| |
|
| | def ravel( |
| | self, |
| | order: _OrderKACF = ..., |
| | ) -> ndarray[Any, _DType_co]: ... |
| |
|
| | @overload |
| | def reshape( |
| | self, shape: _ShapeLike, /, *, order: _OrderACF = ... |
| | ) -> ndarray[Any, _DType_co]: ... |
| | @overload |
| | def reshape( |
| | self, *shape: SupportsIndex, order: _OrderACF = ... |
| | ) -> ndarray[Any, _DType_co]: ... |
| |
|
| | @overload |
| | def astype( |
| | self, |
| | dtype: _DTypeLike[_ScalarType], |
| | order: _OrderKACF = ..., |
| | casting: _CastingKind = ..., |
| | subok: bool = ..., |
| | copy: bool | _CopyMode = ..., |
| | ) -> NDArray[_ScalarType]: ... |
| | @overload |
| | def astype( |
| | self, |
| | dtype: DTypeLike, |
| | order: _OrderKACF = ..., |
| | casting: _CastingKind = ..., |
| | subok: bool = ..., |
| | copy: bool | _CopyMode = ..., |
| | ) -> NDArray[Any]: ... |
| |
|
| | @overload |
| | def view(self: _ArraySelf) -> _ArraySelf: ... |
| | @overload |
| | def view(self, type: type[_NdArraySubClass]) -> _NdArraySubClass: ... |
| | @overload |
| | def view(self, dtype: _DTypeLike[_ScalarType]) -> NDArray[_ScalarType]: ... |
| | @overload |
| | def view(self, dtype: DTypeLike) -> NDArray[Any]: ... |
| | @overload |
| | def view( |
| | self, |
| | dtype: DTypeLike, |
| | type: type[_NdArraySubClass], |
| | ) -> _NdArraySubClass: ... |
| |
|
| | @overload |
| | def getfield( |
| | self, |
| | dtype: _DTypeLike[_ScalarType], |
| | offset: SupportsIndex = ... |
| | ) -> NDArray[_ScalarType]: ... |
| | @overload |
| | def getfield( |
| | self, |
| | dtype: DTypeLike, |
| | offset: SupportsIndex = ... |
| | ) -> NDArray[Any]: ... |
| |
|
| | # Dispatch to the underlying `generic` via protocols |
| | def __int__( |
| | self: ndarray[Any, _dtype[SupportsInt]], # type: ignore[type-var] |
| | ) -> int: ... |
| |
|
| | def __float__( |
| | self: ndarray[Any, _dtype[SupportsFloat]], # type: ignore[type-var] |
| | ) -> float: ... |
| |
|
| | def __complex__( |
| | self: ndarray[Any, _dtype[SupportsComplex]], # type: ignore[type-var] |
| | ) -> complex: ... |
| |
|
| | def __index__( |
| | self: ndarray[Any, _dtype[SupportsIndex]], # type: ignore[type-var] |
| | ) -> int: ... |
| |
|
| | def __len__(self) -> int: ... |
| | def __setitem__(self, key, value): ... |
| | def __iter__(self) -> Any: ... |
| | def __contains__(self, key) -> bool: ... |
| |
|
| | # The last overload is for catching recursive objects whose |
| | # nesting is too deep. |
| | # The first overload is for catching `bytes` (as they are a subtype of |
| | # `Sequence[int]`) and `str`. As `str` is a recursive sequence of |
| | # strings, it will pass through the final overload otherwise |
| |
|
| | @overload |
| | def __lt__(self: _ArrayNumber_co, other: _ArrayLikeNumber_co) -> NDArray[bool_]: ... |
| | @overload |
| | def __lt__(self: _ArrayTD64_co, other: _ArrayLikeTD64_co) -> NDArray[bool_]: ... |
| | @overload |
| | def __lt__(self: NDArray[datetime64], other: _ArrayLikeDT64_co) -> NDArray[bool_]: ... |
| | @overload |
| | def __lt__(self: NDArray[object_], other: Any) -> NDArray[bool_]: ... |
| | @overload |
| | def __lt__(self: NDArray[Any], other: _ArrayLikeObject_co) -> NDArray[bool_]: ... |
| |
|
| | @overload |
| | def __le__(self: _ArrayNumber_co, other: _ArrayLikeNumber_co) -> NDArray[bool_]: ... |
| | @overload |
| | def __le__(self: _ArrayTD64_co, other: _ArrayLikeTD64_co) -> NDArray[bool_]: ... |
| | @overload |
| | def __le__(self: NDArray[datetime64], other: _ArrayLikeDT64_co) -> NDArray[bool_]: ... |
| | @overload |
| | def __le__(self: NDArray[object_], other: Any) -> NDArray[bool_]: ... |
| | @overload |
| | def __le__(self: NDArray[Any], other: _ArrayLikeObject_co) -> NDArray[bool_]: ... |
| |
|
| | @overload |
| | def __gt__(self: _ArrayNumber_co, other: _ArrayLikeNumber_co) -> NDArray[bool_]: ... |
| | @overload |
| | def __gt__(self: _ArrayTD64_co, other: _ArrayLikeTD64_co) -> NDArray[bool_]: ... |
| | @overload |
| | def __gt__(self: NDArray[datetime64], other: _ArrayLikeDT64_co) -> NDArray[bool_]: ... |
| | @overload |
| | def __gt__(self: NDArray[object_], other: Any) -> NDArray[bool_]: ... |
| | @overload |
| | def __gt__(self: NDArray[Any], other: _ArrayLikeObject_co) -> NDArray[bool_]: ... |
| |
|
| | @overload |
| | def __ge__(self: _ArrayNumber_co, other: _ArrayLikeNumber_co) -> NDArray[bool_]: ... |
| | @overload |
| | def __ge__(self: _ArrayTD64_co, other: _ArrayLikeTD64_co) -> NDArray[bool_]: ... |
| | @overload |
| | def __ge__(self: NDArray[datetime64], other: _ArrayLikeDT64_co) -> NDArray[bool_]: ... |
| | @overload |
| | def __ge__(self: NDArray[object_], other: Any) -> NDArray[bool_]: ... |
| | @overload |
| | def __ge__(self: NDArray[Any], other: _ArrayLikeObject_co) -> NDArray[bool_]: ... |
| |
|
| | # Unary ops |
| | @overload |
| | def __abs__(self: NDArray[bool_]) -> NDArray[bool_]: ... |
| | @overload |
| | def __abs__(self: NDArray[complexfloating[_NBit1, _NBit1]]) -> NDArray[floating[_NBit1]]: ... |
| | @overload |
| | def __abs__(self: NDArray[_NumberType]) -> NDArray[_NumberType]: ... |
| | @overload |
| | def __abs__(self: NDArray[timedelta64]) -> NDArray[timedelta64]: ... |
| | @overload |
| | def __abs__(self: NDArray[object_]) -> Any: ... |
| |
|
| | @overload |
| | def __invert__(self: NDArray[bool_]) -> NDArray[bool_]: ... |
| | @overload |
| | def __invert__(self: NDArray[_IntType]) -> NDArray[_IntType]: ... |
| | @overload |
| | def __invert__(self: NDArray[object_]) -> Any: ... |
| |
|
| | @overload |
| | def __pos__(self: NDArray[_NumberType]) -> NDArray[_NumberType]: ... |
| | @overload |
| | def __pos__(self: NDArray[timedelta64]) -> NDArray[timedelta64]: ... |
| | @overload |
| | def __pos__(self: NDArray[object_]) -> Any: ... |
| |
|
| | @overload |
| | def __neg__(self: NDArray[_NumberType]) -> NDArray[_NumberType]: ... |
| | @overload |
| | def __neg__(self: NDArray[timedelta64]) -> NDArray[timedelta64]: ... |
| | @overload |
| | def __neg__(self: NDArray[object_]) -> Any: ... |
| |
|
| | # Binary ops |
| | @overload |
| | def __matmul__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[bool_]: ... # type: ignore[misc] |
| | @overload |
| | def __matmul__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __matmul__(self: _ArrayInt_co, other: _ArrayLikeInt_co) -> NDArray[signedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __matmul__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co) -> NDArray[floating[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __matmul__(self: _ArrayComplex_co, other: _ArrayLikeComplex_co) -> NDArray[complexfloating[Any, Any]]: ... |
| | @overload |
| | def __matmul__(self: NDArray[number[Any]], other: _ArrayLikeNumber_co) -> NDArray[number[Any]]: ... |
| | @overload |
| | def __matmul__(self: NDArray[object_], other: Any) -> Any: ... |
| | @overload |
| | def __matmul__(self: NDArray[Any], other: _ArrayLikeObject_co) -> Any: ... |
| |
|
| | @overload |
| | def __rmatmul__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[bool_]: ... # type: ignore[misc] |
| | @overload |
| | def __rmatmul__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __rmatmul__(self: _ArrayInt_co, other: _ArrayLikeInt_co) -> NDArray[signedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __rmatmul__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co) -> NDArray[floating[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __rmatmul__(self: _ArrayComplex_co, other: _ArrayLikeComplex_co) -> NDArray[complexfloating[Any, Any]]: ... |
| | @overload |
| | def __rmatmul__(self: NDArray[number[Any]], other: _ArrayLikeNumber_co) -> NDArray[number[Any]]: ... |
| | @overload |
| | def __rmatmul__(self: NDArray[object_], other: Any) -> Any: ... |
| | @overload |
| | def __rmatmul__(self: NDArray[Any], other: _ArrayLikeObject_co) -> Any: ... |
| |
|
| | @overload |
| | def __mod__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[int8]: ... # type: ignore[misc] |
| | @overload |
| | def __mod__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __mod__(self: _ArrayInt_co, other: _ArrayLikeInt_co) -> NDArray[signedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __mod__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co) -> NDArray[floating[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __mod__(self: _ArrayTD64_co, other: _SupportsArray[_dtype[timedelta64]] | _NestedSequence[_SupportsArray[_dtype[timedelta64]]]) -> NDArray[timedelta64]: ... |
| | @overload |
| | def __mod__(self: NDArray[object_], other: Any) -> Any: ... |
| | @overload |
| | def __mod__(self: NDArray[Any], other: _ArrayLikeObject_co) -> Any: ... |
| |
|
| | @overload |
| | def __rmod__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[int8]: ... # type: ignore[misc] |
| | @overload |
| | def __rmod__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __rmod__(self: _ArrayInt_co, other: _ArrayLikeInt_co) -> NDArray[signedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __rmod__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co) -> NDArray[floating[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __rmod__(self: _ArrayTD64_co, other: _SupportsArray[_dtype[timedelta64]] | _NestedSequence[_SupportsArray[_dtype[timedelta64]]]) -> NDArray[timedelta64]: ... |
| | @overload |
| | def __rmod__(self: NDArray[object_], other: Any) -> Any: ... |
| | @overload |
| | def __rmod__(self: NDArray[Any], other: _ArrayLikeObject_co) -> Any: ... |
| |
|
| | @overload |
| | def __divmod__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> _2Tuple[NDArray[int8]]: ... # type: ignore[misc] |
| | @overload |
| | def __divmod__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co) -> _2Tuple[NDArray[unsignedinteger[Any]]]: ... # type: ignore[misc] |
| | @overload |
| | def __divmod__(self: _ArrayInt_co, other: _ArrayLikeInt_co) -> _2Tuple[NDArray[signedinteger[Any]]]: ... # type: ignore[misc] |
| | @overload |
| | def __divmod__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co) -> _2Tuple[NDArray[floating[Any]]]: ... # type: ignore[misc] |
| | @overload |
| | def __divmod__(self: _ArrayTD64_co, other: _SupportsArray[_dtype[timedelta64]] | _NestedSequence[_SupportsArray[_dtype[timedelta64]]]) -> tuple[NDArray[int64], NDArray[timedelta64]]: ... |
| |
|
| | @overload |
| | def __rdivmod__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> _2Tuple[NDArray[int8]]: ... # type: ignore[misc] |
| | @overload |
| | def __rdivmod__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co) -> _2Tuple[NDArray[unsignedinteger[Any]]]: ... # type: ignore[misc] |
| | @overload |
| | def __rdivmod__(self: _ArrayInt_co, other: _ArrayLikeInt_co) -> _2Tuple[NDArray[signedinteger[Any]]]: ... # type: ignore[misc] |
| | @overload |
| | def __rdivmod__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co) -> _2Tuple[NDArray[floating[Any]]]: ... # type: ignore[misc] |
| | @overload |
| | def __rdivmod__(self: _ArrayTD64_co, other: _SupportsArray[_dtype[timedelta64]] | _NestedSequence[_SupportsArray[_dtype[timedelta64]]]) -> tuple[NDArray[int64], NDArray[timedelta64]]: ... |
| |
|
| | @overload |
| | def __add__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[bool_]: ... # type: ignore[misc] |
| | @overload |
| | def __add__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __add__(self: _ArrayInt_co, other: _ArrayLikeInt_co) -> NDArray[signedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __add__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co) -> NDArray[floating[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __add__(self: _ArrayComplex_co, other: _ArrayLikeComplex_co) -> NDArray[complexfloating[Any, Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __add__(self: NDArray[number[Any]], other: _ArrayLikeNumber_co) -> NDArray[number[Any]]: ... |
| | @overload |
| | def __add__(self: _ArrayTD64_co, other: _ArrayLikeTD64_co) -> NDArray[timedelta64]: ... # type: ignore[misc] |
| | @overload |
| | def __add__(self: _ArrayTD64_co, other: _ArrayLikeDT64_co) -> NDArray[datetime64]: ... |
| | @overload |
| | def __add__(self: NDArray[datetime64], other: _ArrayLikeTD64_co) -> NDArray[datetime64]: ... |
| | @overload |
| | def __add__(self: NDArray[object_], other: Any) -> Any: ... |
| | @overload |
| | def __add__(self: NDArray[Any], other: _ArrayLikeObject_co) -> Any: ... |
| |
|
| | @overload |
| | def __radd__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[bool_]: ... # type: ignore[misc] |
| | @overload |
| | def __radd__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __radd__(self: _ArrayInt_co, other: _ArrayLikeInt_co) -> NDArray[signedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __radd__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co) -> NDArray[floating[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __radd__(self: _ArrayComplex_co, other: _ArrayLikeComplex_co) -> NDArray[complexfloating[Any, Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __radd__(self: NDArray[number[Any]], other: _ArrayLikeNumber_co) -> NDArray[number[Any]]: ... |
| | @overload |
| | def __radd__(self: _ArrayTD64_co, other: _ArrayLikeTD64_co) -> NDArray[timedelta64]: ... # type: ignore[misc] |
| | @overload |
| | def __radd__(self: _ArrayTD64_co, other: _ArrayLikeDT64_co) -> NDArray[datetime64]: ... |
| | @overload |
| | def __radd__(self: NDArray[datetime64], other: _ArrayLikeTD64_co) -> NDArray[datetime64]: ... |
| | @overload |
| | def __radd__(self: NDArray[object_], other: Any) -> Any: ... |
| | @overload |
| | def __radd__(self: NDArray[Any], other: _ArrayLikeObject_co) -> Any: ... |
| |
|
| | @overload |
| | def __sub__(self: NDArray[_UnknownType], other: _ArrayLikeUnknown) -> NDArray[Any]: ... |
| | @overload |
| | def __sub__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NoReturn: ... |
| | @overload |
| | def __sub__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __sub__(self: _ArrayInt_co, other: _ArrayLikeInt_co) -> NDArray[signedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __sub__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co) -> NDArray[floating[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __sub__(self: _ArrayComplex_co, other: _ArrayLikeComplex_co) -> NDArray[complexfloating[Any, Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __sub__(self: NDArray[number[Any]], other: _ArrayLikeNumber_co) -> NDArray[number[Any]]: ... |
| | @overload |
| | def __sub__(self: _ArrayTD64_co, other: _ArrayLikeTD64_co) -> NDArray[timedelta64]: ... # type: ignore[misc] |
| | @overload |
| | def __sub__(self: NDArray[datetime64], other: _ArrayLikeTD64_co) -> NDArray[datetime64]: ... |
| | @overload |
| | def __sub__(self: NDArray[datetime64], other: _ArrayLikeDT64_co) -> NDArray[timedelta64]: ... |
| | @overload |
| | def __sub__(self: NDArray[object_], other: Any) -> Any: ... |
| | @overload |
| | def __sub__(self: NDArray[Any], other: _ArrayLikeObject_co) -> Any: ... |
| |
|
| | @overload |
| | def __rsub__(self: NDArray[_UnknownType], other: _ArrayLikeUnknown) -> NDArray[Any]: ... |
| | @overload |
| | def __rsub__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NoReturn: ... |
| | @overload |
| | def __rsub__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __rsub__(self: _ArrayInt_co, other: _ArrayLikeInt_co) -> NDArray[signedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __rsub__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co) -> NDArray[floating[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __rsub__(self: _ArrayComplex_co, other: _ArrayLikeComplex_co) -> NDArray[complexfloating[Any, Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __rsub__(self: NDArray[number[Any]], other: _ArrayLikeNumber_co) -> NDArray[number[Any]]: ... |
| | @overload |
| | def __rsub__(self: _ArrayTD64_co, other: _ArrayLikeTD64_co) -> NDArray[timedelta64]: ... # type: ignore[misc] |
| | @overload |
| | def __rsub__(self: _ArrayTD64_co, other: _ArrayLikeDT64_co) -> NDArray[datetime64]: ... # type: ignore[misc] |
| | @overload |
| | def __rsub__(self: NDArray[datetime64], other: _ArrayLikeDT64_co) -> NDArray[timedelta64]: ... |
| | @overload |
| | def __rsub__(self: NDArray[object_], other: Any) -> Any: ... |
| | @overload |
| | def __rsub__(self: NDArray[Any], other: _ArrayLikeObject_co) -> Any: ... |
| |
|
| | @overload |
| | def __mul__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[bool_]: ... # type: ignore[misc] |
| | @overload |
| | def __mul__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __mul__(self: _ArrayInt_co, other: _ArrayLikeInt_co) -> NDArray[signedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __mul__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co) -> NDArray[floating[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __mul__(self: _ArrayComplex_co, other: _ArrayLikeComplex_co) -> NDArray[complexfloating[Any, Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __mul__(self: NDArray[number[Any]], other: _ArrayLikeNumber_co) -> NDArray[number[Any]]: ... |
| | @overload |
| | def __mul__(self: _ArrayTD64_co, other: _ArrayLikeFloat_co) -> NDArray[timedelta64]: ... |
| | @overload |
| | def __mul__(self: _ArrayFloat_co, other: _ArrayLikeTD64_co) -> NDArray[timedelta64]: ... |
| | @overload |
| | def __mul__(self: NDArray[object_], other: Any) -> Any: ... |
| | @overload |
| | def __mul__(self: NDArray[Any], other: _ArrayLikeObject_co) -> Any: ... |
| |
|
| | @overload |
| | def __rmul__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[bool_]: ... # type: ignore[misc] |
| | @overload |
| | def __rmul__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __rmul__(self: _ArrayInt_co, other: _ArrayLikeInt_co) -> NDArray[signedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __rmul__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co) -> NDArray[floating[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __rmul__(self: _ArrayComplex_co, other: _ArrayLikeComplex_co) -> NDArray[complexfloating[Any, Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __rmul__(self: NDArray[number[Any]], other: _ArrayLikeNumber_co) -> NDArray[number[Any]]: ... |
| | @overload |
| | def __rmul__(self: _ArrayTD64_co, other: _ArrayLikeFloat_co) -> NDArray[timedelta64]: ... |
| | @overload |
| | def __rmul__(self: _ArrayFloat_co, other: _ArrayLikeTD64_co) -> NDArray[timedelta64]: ... |
| | @overload |
| | def __rmul__(self: NDArray[object_], other: Any) -> Any: ... |
| | @overload |
| | def __rmul__(self: NDArray[Any], other: _ArrayLikeObject_co) -> Any: ... |
| |
|
| | @overload |
| | def __floordiv__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[int8]: ... # type: ignore[misc] |
| | @overload |
| | def __floordiv__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __floordiv__(self: _ArrayInt_co, other: _ArrayLikeInt_co) -> NDArray[signedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __floordiv__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co) -> NDArray[floating[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __floordiv__(self: NDArray[timedelta64], other: _SupportsArray[_dtype[timedelta64]] | _NestedSequence[_SupportsArray[_dtype[timedelta64]]]) -> NDArray[int64]: ... |
| | @overload |
| | def __floordiv__(self: NDArray[timedelta64], other: _ArrayLikeBool_co) -> NoReturn: ... |
| | @overload |
| | def __floordiv__(self: NDArray[timedelta64], other: _ArrayLikeFloat_co) -> NDArray[timedelta64]: ... |
| | @overload |
| | def __floordiv__(self: NDArray[object_], other: Any) -> Any: ... |
| | @overload |
| | def __floordiv__(self: NDArray[Any], other: _ArrayLikeObject_co) -> Any: ... |
| |
|
| | @overload |
| | def __rfloordiv__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[int8]: ... # type: ignore[misc] |
| | @overload |
| | def __rfloordiv__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __rfloordiv__(self: _ArrayInt_co, other: _ArrayLikeInt_co) -> NDArray[signedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __rfloordiv__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co) -> NDArray[floating[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __rfloordiv__(self: NDArray[timedelta64], other: _SupportsArray[_dtype[timedelta64]] | _NestedSequence[_SupportsArray[_dtype[timedelta64]]]) -> NDArray[int64]: ... |
| | @overload |
| | def __rfloordiv__(self: NDArray[bool_], other: _ArrayLikeTD64_co) -> NoReturn: ... |
| | @overload |
| | def __rfloordiv__(self: _ArrayFloat_co, other: _ArrayLikeTD64_co) -> NDArray[timedelta64]: ... |
| | @overload |
| | def __rfloordiv__(self: NDArray[object_], other: Any) -> Any: ... |
| | @overload |
| | def __rfloordiv__(self: NDArray[Any], other: _ArrayLikeObject_co) -> Any: ... |
| |
|
| | @overload |
| | def __pow__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[int8]: ... # type: ignore[misc] |
| | @overload |
| | def __pow__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __pow__(self: _ArrayInt_co, other: _ArrayLikeInt_co) -> NDArray[signedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __pow__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co) -> NDArray[floating[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __pow__(self: _ArrayComplex_co, other: _ArrayLikeComplex_co) -> NDArray[complexfloating[Any, Any]]: ... |
| | @overload |
| | def __pow__(self: NDArray[number[Any]], other: _ArrayLikeNumber_co) -> NDArray[number[Any]]: ... |
| | @overload |
| | def __pow__(self: NDArray[object_], other: Any) -> Any: ... |
| | @overload |
| | def __pow__(self: NDArray[Any], other: _ArrayLikeObject_co) -> Any: ... |
| |
|
| | @overload |
| | def __rpow__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[int8]: ... # type: ignore[misc] |
| | @overload |
| | def __rpow__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __rpow__(self: _ArrayInt_co, other: _ArrayLikeInt_co) -> NDArray[signedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __rpow__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co) -> NDArray[floating[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __rpow__(self: _ArrayComplex_co, other: _ArrayLikeComplex_co) -> NDArray[complexfloating[Any, Any]]: ... |
| | @overload |
| | def __rpow__(self: NDArray[number[Any]], other: _ArrayLikeNumber_co) -> NDArray[number[Any]]: ... |
| | @overload |
| | def __rpow__(self: NDArray[object_], other: Any) -> Any: ... |
| | @overload |
| | def __rpow__(self: NDArray[Any], other: _ArrayLikeObject_co) -> Any: ... |
| |
|
| | @overload |
| | def __truediv__(self: _ArrayInt_co, other: _ArrayInt_co) -> NDArray[float64]: ... # type: ignore[misc] |
| | @overload |
| | def __truediv__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co) -> NDArray[floating[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __truediv__(self: _ArrayComplex_co, other: _ArrayLikeComplex_co) -> NDArray[complexfloating[Any, Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __truediv__(self: NDArray[number[Any]], other: _ArrayLikeNumber_co) -> NDArray[number[Any]]: ... |
| | @overload |
| | def __truediv__(self: NDArray[timedelta64], other: _SupportsArray[_dtype[timedelta64]] | _NestedSequence[_SupportsArray[_dtype[timedelta64]]]) -> NDArray[float64]: ... |
| | @overload |
| | def __truediv__(self: NDArray[timedelta64], other: _ArrayLikeBool_co) -> NoReturn: ... |
| | @overload |
| | def __truediv__(self: NDArray[timedelta64], other: _ArrayLikeFloat_co) -> NDArray[timedelta64]: ... |
| | @overload |
| | def __truediv__(self: NDArray[object_], other: Any) -> Any: ... |
| | @overload |
| | def __truediv__(self: NDArray[Any], other: _ArrayLikeObject_co) -> Any: ... |
| |
|
| | @overload |
| | def __rtruediv__(self: _ArrayInt_co, other: _ArrayInt_co) -> NDArray[float64]: ... # type: ignore[misc] |
| | @overload |
| | def __rtruediv__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co) -> NDArray[floating[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __rtruediv__(self: _ArrayComplex_co, other: _ArrayLikeComplex_co) -> NDArray[complexfloating[Any, Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __rtruediv__(self: NDArray[number[Any]], other: _ArrayLikeNumber_co) -> NDArray[number[Any]]: ... |
| | @overload |
| | def __rtruediv__(self: NDArray[timedelta64], other: _SupportsArray[_dtype[timedelta64]] | _NestedSequence[_SupportsArray[_dtype[timedelta64]]]) -> NDArray[float64]: ... |
| | @overload |
| | def __rtruediv__(self: NDArray[bool_], other: _ArrayLikeTD64_co) -> NoReturn: ... |
| | @overload |
| | def __rtruediv__(self: _ArrayFloat_co, other: _ArrayLikeTD64_co) -> NDArray[timedelta64]: ... |
| | @overload |
| | def __rtruediv__(self: NDArray[object_], other: Any) -> Any: ... |
| | @overload |
| | def __rtruediv__(self: NDArray[Any], other: _ArrayLikeObject_co) -> Any: ... |
| |
|
| | @overload |
| | def __lshift__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[int8]: ... # type: ignore[misc] |
| | @overload |
| | def __lshift__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __lshift__(self: _ArrayInt_co, other: _ArrayLikeInt_co) -> NDArray[signedinteger[Any]]: ... |
| | @overload |
| | def __lshift__(self: NDArray[object_], other: Any) -> Any: ... |
| | @overload |
| | def __lshift__(self: NDArray[Any], other: _ArrayLikeObject_co) -> Any: ... |
| |
|
| | @overload |
| | def __rlshift__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[int8]: ... # type: ignore[misc] |
| | @overload |
| | def __rlshift__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __rlshift__(self: _ArrayInt_co, other: _ArrayLikeInt_co) -> NDArray[signedinteger[Any]]: ... |
| | @overload |
| | def __rlshift__(self: NDArray[object_], other: Any) -> Any: ... |
| | @overload |
| | def __rlshift__(self: NDArray[Any], other: _ArrayLikeObject_co) -> Any: ... |
| |
|
| | @overload |
| | def __rshift__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[int8]: ... # type: ignore[misc] |
| | @overload |
| | def __rshift__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __rshift__(self: _ArrayInt_co, other: _ArrayLikeInt_co) -> NDArray[signedinteger[Any]]: ... |
| | @overload |
| | def __rshift__(self: NDArray[object_], other: Any) -> Any: ... |
| | @overload |
| | def __rshift__(self: NDArray[Any], other: _ArrayLikeObject_co) -> Any: ... |
| |
|
| | @overload |
| | def __rrshift__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[int8]: ... # type: ignore[misc] |
| | @overload |
| | def __rrshift__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __rrshift__(self: _ArrayInt_co, other: _ArrayLikeInt_co) -> NDArray[signedinteger[Any]]: ... |
| | @overload |
| | def __rrshift__(self: NDArray[object_], other: Any) -> Any: ... |
| | @overload |
| | def __rrshift__(self: NDArray[Any], other: _ArrayLikeObject_co) -> Any: ... |
| |
|
| | @overload |
| | def __and__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[bool_]: ... # type: ignore[misc] |
| | @overload |
| | def __and__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __and__(self: _ArrayInt_co, other: _ArrayLikeInt_co) -> NDArray[signedinteger[Any]]: ... |
| | @overload |
| | def __and__(self: NDArray[object_], other: Any) -> Any: ... |
| | @overload |
| | def __and__(self: NDArray[Any], other: _ArrayLikeObject_co) -> Any: ... |
| |
|
| | @overload |
| | def __rand__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[bool_]: ... # type: ignore[misc] |
| | @overload |
| | def __rand__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __rand__(self: _ArrayInt_co, other: _ArrayLikeInt_co) -> NDArray[signedinteger[Any]]: ... |
| | @overload |
| | def __rand__(self: NDArray[object_], other: Any) -> Any: ... |
| | @overload |
| | def __rand__(self: NDArray[Any], other: _ArrayLikeObject_co) -> Any: ... |
| |
|
| | @overload |
| | def __xor__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[bool_]: ... # type: ignore[misc] |
| | @overload |
| | def __xor__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __xor__(self: _ArrayInt_co, other: _ArrayLikeInt_co) -> NDArray[signedinteger[Any]]: ... |
| | @overload |
| | def __xor__(self: NDArray[object_], other: Any) -> Any: ... |
| | @overload |
| | def __xor__(self: NDArray[Any], other: _ArrayLikeObject_co) -> Any: ... |
| |
|
| | @overload |
| | def __rxor__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[bool_]: ... # type: ignore[misc] |
| | @overload |
| | def __rxor__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __rxor__(self: _ArrayInt_co, other: _ArrayLikeInt_co) -> NDArray[signedinteger[Any]]: ... |
| | @overload |
| | def __rxor__(self: NDArray[object_], other: Any) -> Any: ... |
| | @overload |
| | def __rxor__(self: NDArray[Any], other: _ArrayLikeObject_co) -> Any: ... |
| |
|
| | @overload |
| | def __or__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[bool_]: ... # type: ignore[misc] |
| | @overload |
| | def __or__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __or__(self: _ArrayInt_co, other: _ArrayLikeInt_co) -> NDArray[signedinteger[Any]]: ... |
| | @overload |
| | def __or__(self: NDArray[object_], other: Any) -> Any: ... |
| | @overload |
| | def __or__(self: NDArray[Any], other: _ArrayLikeObject_co) -> Any: ... |
| |
|
| | @overload |
| | def __ror__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[bool_]: ... # type: ignore[misc] |
| | @overload |
| | def __ror__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] |
| | @overload |
| | def __ror__(self: _ArrayInt_co, other: _ArrayLikeInt_co) -> NDArray[signedinteger[Any]]: ... |
| | @overload |
| | def __ror__(self: NDArray[object_], other: Any) -> Any: ... |
| | @overload |
| | def __ror__(self: NDArray[Any], other: _ArrayLikeObject_co) -> Any: ... |
| |
|
| | # `np.generic` does not support inplace operations |
| |
|
| | # NOTE: Inplace ops generally use "same_kind" casting w.r.t. to the left |
| | # operand. An exception to this rule are unsigned integers though, which |
| | # also accepts a signed integer for the right operand as long it is a 0D |
| | # object and its value is >= 0 |
| | @overload |
| | def __iadd__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[bool_]: ... |
| | @overload |
| | def __iadd__(self: NDArray[unsignedinteger[_NBit1]], other: _ArrayLikeUInt_co | _IntLike_co) -> NDArray[unsignedinteger[_NBit1]]: ... |
| | @overload |
| | def __iadd__(self: NDArray[signedinteger[_NBit1]], other: _ArrayLikeInt_co) -> NDArray[signedinteger[_NBit1]]: ... |
| | @overload |
| | def __iadd__(self: NDArray[floating[_NBit1]], other: _ArrayLikeFloat_co) -> NDArray[floating[_NBit1]]: ... |
| | @overload |
| | def __iadd__(self: NDArray[complexfloating[_NBit1, _NBit1]], other: _ArrayLikeComplex_co) -> NDArray[complexfloating[_NBit1, _NBit1]]: ... |
| | @overload |
| | def __iadd__(self: NDArray[timedelta64], other: _ArrayLikeTD64_co) -> NDArray[timedelta64]: ... |
| | @overload |
| | def __iadd__(self: NDArray[datetime64], other: _ArrayLikeTD64_co) -> NDArray[datetime64]: ... |
| | @overload |
| | def __iadd__(self: NDArray[object_], other: Any) -> NDArray[object_]: ... |
| |
|
| | @overload |
| | def __isub__(self: NDArray[unsignedinteger[_NBit1]], other: _ArrayLikeUInt_co | _IntLike_co) -> NDArray[unsignedinteger[_NBit1]]: ... |
| | @overload |
| | def __isub__(self: NDArray[signedinteger[_NBit1]], other: _ArrayLikeInt_co) -> NDArray[signedinteger[_NBit1]]: ... |
| | @overload |
| | def __isub__(self: NDArray[floating[_NBit1]], other: _ArrayLikeFloat_co) -> NDArray[floating[_NBit1]]: ... |
| | @overload |
| | def __isub__(self: NDArray[complexfloating[_NBit1, _NBit1]], other: _ArrayLikeComplex_co) -> NDArray[complexfloating[_NBit1, _NBit1]]: ... |
| | @overload |
| | def __isub__(self: NDArray[timedelta64], other: _ArrayLikeTD64_co) -> NDArray[timedelta64]: ... |
| | @overload |
| | def __isub__(self: NDArray[datetime64], other: _ArrayLikeTD64_co) -> NDArray[datetime64]: ... |
| | @overload |
| | def __isub__(self: NDArray[object_], other: Any) -> NDArray[object_]: ... |
| |
|
| | @overload |
| | def __imul__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[bool_]: ... |
| | @overload |
| | def __imul__(self: NDArray[unsignedinteger[_NBit1]], other: _ArrayLikeUInt_co | _IntLike_co) -> NDArray[unsignedinteger[_NBit1]]: ... |
| | @overload |
| | def __imul__(self: NDArray[signedinteger[_NBit1]], other: _ArrayLikeInt_co) -> NDArray[signedinteger[_NBit1]]: ... |
| | @overload |
| | def __imul__(self: NDArray[floating[_NBit1]], other: _ArrayLikeFloat_co) -> NDArray[floating[_NBit1]]: ... |
| | @overload |
| | def __imul__(self: NDArray[complexfloating[_NBit1, _NBit1]], other: _ArrayLikeComplex_co) -> NDArray[complexfloating[_NBit1, _NBit1]]: ... |
| | @overload |
| | def __imul__(self: NDArray[timedelta64], other: _ArrayLikeFloat_co) -> NDArray[timedelta64]: ... |
| | @overload |
| | def __imul__(self: NDArray[object_], other: Any) -> NDArray[object_]: ... |
| |
|
| | @overload |
| | def __itruediv__(self: NDArray[floating[_NBit1]], other: _ArrayLikeFloat_co) -> NDArray[floating[_NBit1]]: ... |
| | @overload |
| | def __itruediv__(self: NDArray[complexfloating[_NBit1, _NBit1]], other: _ArrayLikeComplex_co) -> NDArray[complexfloating[_NBit1, _NBit1]]: ... |
| | @overload |
| | def __itruediv__(self: NDArray[timedelta64], other: _ArrayLikeBool_co) -> NoReturn: ... |
| | @overload |
| | def __itruediv__(self: NDArray[timedelta64], other: _ArrayLikeInt_co) -> NDArray[timedelta64]: ... |
| | @overload |
| | def __itruediv__(self: NDArray[object_], other: Any) -> NDArray[object_]: ... |
| |
|
| | @overload |
| | def __ifloordiv__(self: NDArray[unsignedinteger[_NBit1]], other: _ArrayLikeUInt_co | _IntLike_co) -> NDArray[unsignedinteger[_NBit1]]: ... |
| | @overload |
| | def __ifloordiv__(self: NDArray[signedinteger[_NBit1]], other: _ArrayLikeInt_co) -> NDArray[signedinteger[_NBit1]]: ... |
| | @overload |
| | def __ifloordiv__(self: NDArray[floating[_NBit1]], other: _ArrayLikeFloat_co) -> NDArray[floating[_NBit1]]: ... |
| | @overload |
| | def __ifloordiv__(self: NDArray[complexfloating[_NBit1, _NBit1]], other: _ArrayLikeComplex_co) -> NDArray[complexfloating[_NBit1, _NBit1]]: ... |
| | @overload |
| | def __ifloordiv__(self: NDArray[timedelta64], other: _ArrayLikeBool_co) -> NoReturn: ... |
| | @overload |
| | def __ifloordiv__(self: NDArray[timedelta64], other: _ArrayLikeInt_co) -> NDArray[timedelta64]: ... |
| | @overload |
| | def __ifloordiv__(self: NDArray[object_], other: Any) -> NDArray[object_]: ... |
| |
|
| | @overload |
| | def __ipow__(self: NDArray[unsignedinteger[_NBit1]], other: _ArrayLikeUInt_co | _IntLike_co) -> NDArray[unsignedinteger[_NBit1]]: ... |
| | @overload |
| | def __ipow__(self: NDArray[signedinteger[_NBit1]], other: _ArrayLikeInt_co) -> NDArray[signedinteger[_NBit1]]: ... |
| | @overload |
| | def __ipow__(self: NDArray[floating[_NBit1]], other: _ArrayLikeFloat_co) -> NDArray[floating[_NBit1]]: ... |
| | @overload |
| | def __ipow__(self: NDArray[complexfloating[_NBit1, _NBit1]], other: _ArrayLikeComplex_co) -> NDArray[complexfloating[_NBit1, _NBit1]]: ... |
| | @overload |
| | def __ipow__(self: NDArray[object_], other: Any) -> NDArray[object_]: ... |
| |
|
| | @overload |
| | def __imod__(self: NDArray[unsignedinteger[_NBit1]], other: _ArrayLikeUInt_co | _IntLike_co) -> NDArray[unsignedinteger[_NBit1]]: ... |
| | @overload |
| | def __imod__(self: NDArray[signedinteger[_NBit1]], other: _ArrayLikeInt_co) -> NDArray[signedinteger[_NBit1]]: ... |
| | @overload |
| | def __imod__(self: NDArray[floating[_NBit1]], other: _ArrayLikeFloat_co) -> NDArray[floating[_NBit1]]: ... |
| | @overload |
| | def __imod__(self: NDArray[timedelta64], other: _SupportsArray[_dtype[timedelta64]] | _NestedSequence[_SupportsArray[_dtype[timedelta64]]]) -> NDArray[timedelta64]: ... |
| | @overload |
| | def __imod__(self: NDArray[object_], other: Any) -> NDArray[object_]: ... |
| |
|
| | @overload |
| | def __ilshift__(self: NDArray[unsignedinteger[_NBit1]], other: _ArrayLikeUInt_co | _IntLike_co) -> NDArray[unsignedinteger[_NBit1]]: ... |
| | @overload |
| | def __ilshift__(self: NDArray[signedinteger[_NBit1]], other: _ArrayLikeInt_co) -> NDArray[signedinteger[_NBit1]]: ... |
| | @overload |
| | def __ilshift__(self: NDArray[object_], other: Any) -> NDArray[object_]: ... |
| |
|
| | @overload |
| | def __irshift__(self: NDArray[unsignedinteger[_NBit1]], other: _ArrayLikeUInt_co | _IntLike_co) -> NDArray[unsignedinteger[_NBit1]]: ... |
| | @overload |
| | def __irshift__(self: NDArray[signedinteger[_NBit1]], other: _ArrayLikeInt_co) -> NDArray[signedinteger[_NBit1]]: ... |
| | @overload |
| | def __irshift__(self: NDArray[object_], other: Any) -> NDArray[object_]: ... |
| |
|
| | @overload |
| | def __iand__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[bool_]: ... |
| | @overload |
| | def __iand__(self: NDArray[unsignedinteger[_NBit1]], other: _ArrayLikeUInt_co | _IntLike_co) -> NDArray[unsignedinteger[_NBit1]]: ... |
| | @overload |
| | def __iand__(self: NDArray[signedinteger[_NBit1]], other: _ArrayLikeInt_co) -> NDArray[signedinteger[_NBit1]]: ... |
| | @overload |
| | def __iand__(self: NDArray[object_], other: Any) -> NDArray[object_]: ... |
| |
|
| | @overload |
| | def __ixor__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[bool_]: ... |
| | @overload |
| | def __ixor__(self: NDArray[unsignedinteger[_NBit1]], other: _ArrayLikeUInt_co | _IntLike_co) -> NDArray[unsignedinteger[_NBit1]]: ... |
| | @overload |
| | def __ixor__(self: NDArray[signedinteger[_NBit1]], other: _ArrayLikeInt_co) -> NDArray[signedinteger[_NBit1]]: ... |
| | @overload |
| | def __ixor__(self: NDArray[object_], other: Any) -> NDArray[object_]: ... |
| |
|
| | @overload |
| | def __ior__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[bool_]: ... |
| | @overload |
| | def __ior__(self: NDArray[unsignedinteger[_NBit1]], other: _ArrayLikeUInt_co | _IntLike_co) -> NDArray[unsignedinteger[_NBit1]]: ... |
| | @overload |
| | def __ior__(self: NDArray[signedinteger[_NBit1]], other: _ArrayLikeInt_co) -> NDArray[signedinteger[_NBit1]]: ... |
| | @overload |
| | def __ior__(self: NDArray[object_], other: Any) -> NDArray[object_]: ... |
| |
|
| | @overload |
| | def __imatmul__(self: NDArray[bool_], other: _ArrayLikeBool_co) -> NDArray[bool_]: ... |
| | @overload |
| | def __imatmul__(self: NDArray[unsignedinteger[_NBit1]], other: _ArrayLikeUInt_co) -> NDArray[unsignedinteger[_NBit1]]: ... |
| | @overload |
| | def __imatmul__(self: NDArray[signedinteger[_NBit1]], other: _ArrayLikeInt_co) -> NDArray[signedinteger[_NBit1]]: ... |
| | @overload |
| | def __imatmul__(self: NDArray[floating[_NBit1]], other: _ArrayLikeFloat_co) -> NDArray[floating[_NBit1]]: ... |
| | @overload |
| | def __imatmul__(self: NDArray[complexfloating[_NBit1, _NBit1]], other: _ArrayLikeComplex_co) -> NDArray[complexfloating[_NBit1, _NBit1]]: ... |
| | @overload |
| | def __imatmul__(self: NDArray[object_], other: Any) -> NDArray[object_]: ... |
| |
|
| | def __dlpack__(self: NDArray[number[Any]], *, stream: None = ...) -> _PyCapsule: ... |
| | def __dlpack_device__(self) -> tuple[int, L[0]]: ... |
| |
|
| | # Keep `dtype` at the bottom to avoid name conflicts with `np.dtype` |
| | @property |
| | def dtype(self) -> _DType_co: ... |
| |
|
| | # NOTE: while `np.generic` is not technically an instance of `ABCMeta`, |
| | # the `@abstractmethod` decorator is herein used to (forcefully) deny |
| | # the creation of `np.generic` instances. |
| | # The `# type: ignore` comments are necessary to silence mypy errors regarding |
| | # the missing `ABCMeta` metaclass. |
| |
|
| | # See https://github.com/numpy/numpy-stubs/pull/80 for more details. |
| |
|
| | _ScalarType = TypeVar("_ScalarType", bound=generic) |
| | _NBit1 = TypeVar("_NBit1", bound=NBitBase) |
| | _NBit2 = TypeVar("_NBit2", bound=NBitBase) |
| |
|
| | class generic(_ArrayOrScalarCommon): |
| | @abstractmethod |
| | def __init__(self, *args: Any, **kwargs: Any) -> None: ... |
| | @overload |
| | def __array__(self: _ScalarType, dtype: None = ..., /) -> ndarray[Any, _dtype[_ScalarType]]: ... |
| | @overload |
| | def __array__(self, dtype: _DType, /) -> ndarray[Any, _DType]: ... |
| | def __hash__(self) -> int: ... |
| | @property |
| | def base(self) -> None: ... |
| | @property |
| | def ndim(self) -> L[0]: ... |
| | @property |
| | def size(self) -> L[1]: ... |
| | @property |
| | def shape(self) -> tuple[()]: ... |
| | @property |
| | def strides(self) -> tuple[()]: ... |
| | def byteswap(self: _ScalarType, inplace: L[False] = ...) -> _ScalarType: ... |
| | @property |
| | def flat(self: _ScalarType) -> flatiter[ndarray[Any, _dtype[_ScalarType]]]: ... |
| |
|
| | if sys.version_info >= (3, 12): |
| | def __buffer__(self, flags: int, /) -> memoryview: ... |
| |
|
| | @overload |
| | def astype( |
| | self, |
| | dtype: _DTypeLike[_ScalarType], |
| | order: _OrderKACF = ..., |
| | casting: _CastingKind = ..., |
| | subok: bool = ..., |
| | copy: bool | _CopyMode = ..., |
| | ) -> _ScalarType: ... |
| | @overload |
| | def astype( |
| | self, |
| | dtype: DTypeLike, |
| | order: _OrderKACF = ..., |
| | casting: _CastingKind = ..., |
| | subok: bool = ..., |
| | copy: bool | _CopyMode = ..., |
| | ) -> Any: ... |
| |
|
| | # NOTE: `view` will perform a 0D->scalar cast, |
| | # thus the array `type` is irrelevant to the output type |
| | @overload |
| | def view( |
| | self: _ScalarType, |
| | type: type[ndarray[Any, Any]] = ..., |
| | ) -> _ScalarType: ... |
| | @overload |
| | def view( |
| | self, |
| | dtype: _DTypeLike[_ScalarType], |
| | type: type[ndarray[Any, Any]] = ..., |
| | ) -> _ScalarType: ... |
| | @overload |
| | def view( |
| | self, |
| | dtype: DTypeLike, |
| | type: type[ndarray[Any, Any]] = ..., |
| | ) -> Any: ... |
| |
|
| | @overload |
| | def getfield( |
| | self, |
| | dtype: _DTypeLike[_ScalarType], |
| | offset: SupportsIndex = ... |
| | ) -> _ScalarType: ... |
| | @overload |
| | def getfield( |
| | self, |
| | dtype: DTypeLike, |
| | offset: SupportsIndex = ... |
| | ) -> Any: ... |
| |
|
| | def item( |
| | self, args: L[0] | tuple[()] | tuple[L[0]] = ..., /, |
| | ) -> Any: ... |
| |
|
| | @overload |
| | def take( # type: ignore[misc] |
| | self: _ScalarType, |
| | indices: _IntLike_co, |
| | axis: None | SupportsIndex = ..., |
| | out: None = ..., |
| | mode: _ModeKind = ..., |
| | ) -> _ScalarType: ... |
| | @overload |
| | def take( # type: ignore[misc] |
| | self: _ScalarType, |
| | indices: _ArrayLikeInt_co, |
| | axis: None | SupportsIndex = ..., |
| | out: None = ..., |
| | mode: _ModeKind = ..., |
| | ) -> ndarray[Any, _dtype[_ScalarType]]: ... |
| | @overload |
| | def take( |
| | self, |
| | indices: _ArrayLikeInt_co, |
| | axis: None | SupportsIndex = ..., |
| | out: _NdArraySubClass = ..., |
| | mode: _ModeKind = ..., |
| | ) -> _NdArraySubClass: ... |
| |
|
| | def repeat( |
| | self: _ScalarType, |
| | repeats: _ArrayLikeInt_co, |
| | axis: None | SupportsIndex = ..., |
| | ) -> ndarray[Any, _dtype[_ScalarType]]: ... |
| |
|
| | def flatten( |
| | self: _ScalarType, |
| | order: _OrderKACF = ..., |
| | ) -> ndarray[Any, _dtype[_ScalarType]]: ... |
| |
|
| | def ravel( |
| | self: _ScalarType, |
| | order: _OrderKACF = ..., |
| | ) -> ndarray[Any, _dtype[_ScalarType]]: ... |
| |
|
| | @overload |
| | def reshape( |
| | self: _ScalarType, shape: _ShapeLike, /, *, order: _OrderACF = ... |
| | ) -> ndarray[Any, _dtype[_ScalarType]]: ... |
| | @overload |
| | def reshape( |
| | self: _ScalarType, *shape: SupportsIndex, order: _OrderACF = ... |
| | ) -> ndarray[Any, _dtype[_ScalarType]]: ... |
| |
|
| | def squeeze( |
| | self: _ScalarType, axis: None | L[0] | tuple[()] = ... |
| | ) -> _ScalarType: ... |
| | def transpose(self: _ScalarType, axes: None | tuple[()] = ..., /) -> _ScalarType: ... |
| | # Keep `dtype` at the bottom to avoid name conflicts with `np.dtype` |
| | @property |
| | def dtype(self: _ScalarType) -> _dtype[_ScalarType]: ... |
| |
|
| | class number(generic, Generic[_NBit1]): # type: ignore |
| | @property |
| | def real(self: _ArraySelf) -> _ArraySelf: ... |
| | @property |
| | def imag(self: _ArraySelf) -> _ArraySelf: ... |
| | def __class_getitem__(self, item: Any) -> GenericAlias: ... |
| | def __int__(self) -> int: ... |
| | def __float__(self) -> float: ... |
| | def __complex__(self) -> complex: ... |
| | def __neg__(self: _ArraySelf) -> _ArraySelf: ... |
| | def __pos__(self: _ArraySelf) -> _ArraySelf: ... |
| | def __abs__(self: _ArraySelf) -> _ArraySelf: ... |
| | # Ensure that objects annotated as `number` support arithmetic operations |
| | __add__: _NumberOp |
| | __radd__: _NumberOp |
| | __sub__: _NumberOp |
| | __rsub__: _NumberOp |
| | __mul__: _NumberOp |
| | __rmul__: _NumberOp |
| | __floordiv__: _NumberOp |
| | __rfloordiv__: _NumberOp |
| | __pow__: _NumberOp |
| | __rpow__: _NumberOp |
| | __truediv__: _NumberOp |
| | __rtruediv__: _NumberOp |
| | __lt__: _ComparisonOp[_NumberLike_co, _ArrayLikeNumber_co] |
| | __le__: _ComparisonOp[_NumberLike_co, _ArrayLikeNumber_co] |
| | __gt__: _ComparisonOp[_NumberLike_co, _ArrayLikeNumber_co] |
| | __ge__: _ComparisonOp[_NumberLike_co, _ArrayLikeNumber_co] |
| |
|
| | class bool_(generic): |
| | def __init__(self, value: object = ..., /) -> None: ... |
| | def item( |
| | self, args: L[0] | tuple[()] | tuple[L[0]] = ..., /, |
| | ) -> bool: ... |
| | def tolist(self) -> bool: ... |
| | @property |
| | def real(self: _ArraySelf) -> _ArraySelf: ... |
| | @property |
| | def imag(self: _ArraySelf) -> _ArraySelf: ... |
| | def __int__(self) -> int: ... |
| | def __float__(self) -> float: ... |
| | def __complex__(self) -> complex: ... |
| | def __abs__(self: _ArraySelf) -> _ArraySelf: ... |
| | __add__: _BoolOp[bool_] |
| | __radd__: _BoolOp[bool_] |
| | __sub__: _BoolSub |
| | __rsub__: _BoolSub |
| | __mul__: _BoolOp[bool_] |
| | __rmul__: _BoolOp[bool_] |
| | __floordiv__: _BoolOp[int8] |
| | __rfloordiv__: _BoolOp[int8] |
| | __pow__: _BoolOp[int8] |
| | __rpow__: _BoolOp[int8] |
| | __truediv__: _BoolTrueDiv |
| | __rtruediv__: _BoolTrueDiv |
| | def __invert__(self) -> bool_: ... |
| | __lshift__: _BoolBitOp[int8] |
| | __rlshift__: _BoolBitOp[int8] |
| | __rshift__: _BoolBitOp[int8] |
| | __rrshift__: _BoolBitOp[int8] |
| | __and__: _BoolBitOp[bool_] |
| | __rand__: _BoolBitOp[bool_] |
| | __xor__: _BoolBitOp[bool_] |
| | __rxor__: _BoolBitOp[bool_] |
| | __or__: _BoolBitOp[bool_] |
| | __ror__: _BoolBitOp[bool_] |
| | __mod__: _BoolMod |
| | __rmod__: _BoolMod |
| | __divmod__: _BoolDivMod |
| | __rdivmod__: _BoolDivMod |
| | __lt__: _ComparisonOp[_NumberLike_co, _ArrayLikeNumber_co] |
| | __le__: _ComparisonOp[_NumberLike_co, _ArrayLikeNumber_co] |
| | __gt__: _ComparisonOp[_NumberLike_co, _ArrayLikeNumber_co] |
| | __ge__: _ComparisonOp[_NumberLike_co, _ArrayLikeNumber_co] |
| |
|
| | class object_(generic): |
| | def __init__(self, value: object = ..., /) -> None: ... |
| | @property |
| | def real(self: _ArraySelf) -> _ArraySelf: ... |
| | @property |
| | def imag(self: _ArraySelf) -> _ArraySelf: ... |
| | # The 3 protocols below may or may not raise, |
| | # depending on the underlying object |
| | def __int__(self) -> int: ... |
| | def __float__(self) -> float: ... |
| | def __complex__(self) -> complex: ... |
| |
|
| | if sys.version_info >= (3, 12): |
| | def __release_buffer__(self, buffer: memoryview, /) -> None: ... |
| |
|
| | # The `datetime64` constructors requires an object with the three attributes below, |
| | # and thus supports datetime duck typing |
| | class _DatetimeScalar(Protocol): |
| | @property |
| | def day(self) -> int: ... |
| | @property |
| | def month(self) -> int: ... |
| | @property |
| | def year(self) -> int: ... |
| |
|
| | # TODO: `item`/`tolist` returns either `dt.date`, `dt.datetime` or `int` |
| | # depending on the unit |
| | class datetime64(generic): |
| | @overload |
| | def __init__( |
| | self, |
| | value: None | datetime64 | _CharLike_co | _DatetimeScalar = ..., |
| | format: _CharLike_co | tuple[_CharLike_co, _IntLike_co] = ..., |
| | /, |
| | ) -> None: ... |
| | @overload |
| | def __init__( |
| | self, |
| | value: int, |
| | format: _CharLike_co | tuple[_CharLike_co, _IntLike_co], |
| | /, |
| | ) -> None: ... |
| | def __add__(self, other: _TD64Like_co) -> datetime64: ... |
| | def __radd__(self, other: _TD64Like_co) -> datetime64: ... |
| | @overload |
| | def __sub__(self, other: datetime64) -> timedelta64: ... |
| | @overload |
| | def __sub__(self, other: _TD64Like_co) -> datetime64: ... |
| | def __rsub__(self, other: datetime64) -> timedelta64: ... |
| | __lt__: _ComparisonOp[datetime64, _ArrayLikeDT64_co] |
| | __le__: _ComparisonOp[datetime64, _ArrayLikeDT64_co] |
| | __gt__: _ComparisonOp[datetime64, _ArrayLikeDT64_co] |
| | __ge__: _ComparisonOp[datetime64, _ArrayLikeDT64_co] |
| |
|
| | _IntValue = Union[SupportsInt, _CharLike_co, SupportsIndex] |
| | _FloatValue = Union[None, _CharLike_co, SupportsFloat, SupportsIndex] |
| | _ComplexValue = Union[ |
| | None, |
| | _CharLike_co, |
| | SupportsFloat, |
| | SupportsComplex, |
| | SupportsIndex, |
| | complex, # `complex` is not a subtype of `SupportsComplex` |
| | ] |
| |
|
| | class integer(number[_NBit1]): # type: ignore |
| | @property |
| | def numerator(self: _ScalarType) -> _ScalarType: ... |
| | @property |
| | def denominator(self) -> L[1]: ... |
| | @overload |
| | def __round__(self, ndigits: None = ...) -> int: ... |
| | @overload |
| | def __round__(self: _ScalarType, ndigits: SupportsIndex) -> _ScalarType: ... |
| |
|
| | # NOTE: `__index__` is technically defined in the bottom-most |
| | # sub-classes (`int64`, `uint32`, etc) |
| | def item( |
| | self, args: L[0] | tuple[()] | tuple[L[0]] = ..., /, |
| | ) -> int: ... |
| | def tolist(self) -> int: ... |
| | def is_integer(self) -> L[True]: ... |
| | def bit_count(self: _ScalarType) -> int: ... |
| | def __index__(self) -> int: ... |
| | __truediv__: _IntTrueDiv[_NBit1] |
| | __rtruediv__: _IntTrueDiv[_NBit1] |
| | def __mod__(self, value: _IntLike_co) -> integer[Any]: ... |
| | def __rmod__(self, value: _IntLike_co) -> integer[Any]: ... |
| | def __invert__(self: _IntType) -> _IntType: ... |
| | # Ensure that objects annotated as `integer` support bit-wise operations |
| | def __lshift__(self, other: _IntLike_co) -> integer[Any]: ... |
| | def __rlshift__(self, other: _IntLike_co) -> integer[Any]: ... |
| | def __rshift__(self, other: _IntLike_co) -> integer[Any]: ... |
| | def __rrshift__(self, other: _IntLike_co) -> integer[Any]: ... |
| | def __and__(self, other: _IntLike_co) -> integer[Any]: ... |
| | def __rand__(self, other: _IntLike_co) -> integer[Any]: ... |
| | def __or__(self, other: _IntLike_co) -> integer[Any]: ... |
| | def __ror__(self, other: _IntLike_co) -> integer[Any]: ... |
| | def __xor__(self, other: _IntLike_co) -> integer[Any]: ... |
| | def __rxor__(self, other: _IntLike_co) -> integer[Any]: ... |
| |
|
| | class signedinteger(integer[_NBit1]): |
| | def __init__(self, value: _IntValue = ..., /) -> None: ... |
| | __add__: _SignedIntOp[_NBit1] |
| | __radd__: _SignedIntOp[_NBit1] |
| | __sub__: _SignedIntOp[_NBit1] |
| | __rsub__: _SignedIntOp[_NBit1] |
| | __mul__: _SignedIntOp[_NBit1] |
| | __rmul__: _SignedIntOp[_NBit1] |
| | __floordiv__: _SignedIntOp[_NBit1] |
| | __rfloordiv__: _SignedIntOp[_NBit1] |
| | __pow__: _SignedIntOp[_NBit1] |
| | __rpow__: _SignedIntOp[_NBit1] |
| | __lshift__: _SignedIntBitOp[_NBit1] |
| | __rlshift__: _SignedIntBitOp[_NBit1] |
| | __rshift__: _SignedIntBitOp[_NBit1] |
| | __rrshift__: _SignedIntBitOp[_NBit1] |
| | __and__: _SignedIntBitOp[_NBit1] |
| | __rand__: _SignedIntBitOp[_NBit1] |
| | __xor__: _SignedIntBitOp[_NBit1] |
| | __rxor__: _SignedIntBitOp[_NBit1] |
| | __or__: _SignedIntBitOp[_NBit1] |
| | __ror__: _SignedIntBitOp[_NBit1] |
| | __mod__: _SignedIntMod[_NBit1] |
| | __rmod__: _SignedIntMod[_NBit1] |
| | __divmod__: _SignedIntDivMod[_NBit1] |
| | __rdivmod__: _SignedIntDivMod[_NBit1] |
| |
|
| | int8 = signedinteger[_8Bit] |
| | int16 = signedinteger[_16Bit] |
| | int32 = signedinteger[_32Bit] |
| | int64 = signedinteger[_64Bit] |
| |
|
| | byte = signedinteger[_NBitByte] |
| | short = signedinteger[_NBitShort] |
| | intc = signedinteger[_NBitIntC] |
| | intp = signedinteger[_NBitIntP] |
| | int_ = signedinteger[_NBitInt] |
| | longlong = signedinteger[_NBitLongLong] |
| |
|
| | # TODO: `item`/`tolist` returns either `dt.timedelta` or `int` |
| | # depending on the unit |
| | class timedelta64(generic): |
| | def __init__( |
| | self, |
| | value: None | int | _CharLike_co | dt.timedelta | timedelta64 = ..., |
| | format: _CharLike_co | tuple[_CharLike_co, _IntLike_co] = ..., |
| | /, |
| | ) -> None: ... |
| | @property |
| | def numerator(self: _ScalarType) -> _ScalarType: ... |
| | @property |
| | def denominator(self) -> L[1]: ... |
| |
|
| | # NOTE: Only a limited number of units support conversion |
| | # to builtin scalar types: `Y`, `M`, `ns`, `ps`, `fs`, `as` |
| | def __int__(self) -> int: ... |
| | def __float__(self) -> float: ... |
| | def __complex__(self) -> complex: ... |
| | def __neg__(self: _ArraySelf) -> _ArraySelf: ... |
| | def __pos__(self: _ArraySelf) -> _ArraySelf: ... |
| | def __abs__(self: _ArraySelf) -> _ArraySelf: ... |
| | def __add__(self, other: _TD64Like_co) -> timedelta64: ... |
| | def __radd__(self, other: _TD64Like_co) -> timedelta64: ... |
| | def __sub__(self, other: _TD64Like_co) -> timedelta64: ... |
| | def __rsub__(self, other: _TD64Like_co) -> timedelta64: ... |
| | def __mul__(self, other: _FloatLike_co) -> timedelta64: ... |
| | def __rmul__(self, other: _FloatLike_co) -> timedelta64: ... |
| | __truediv__: _TD64Div[float64] |
| | __floordiv__: _TD64Div[int64] |
| | def __rtruediv__(self, other: timedelta64) -> float64: ... |
| | def __rfloordiv__(self, other: timedelta64) -> int64: ... |
| | def __mod__(self, other: timedelta64) -> timedelta64: ... |
| | def __rmod__(self, other: timedelta64) -> timedelta64: ... |
| | def __divmod__(self, other: timedelta64) -> tuple[int64, timedelta64]: ... |
| | def __rdivmod__(self, other: timedelta64) -> tuple[int64, timedelta64]: ... |
| | __lt__: _ComparisonOp[_TD64Like_co, _ArrayLikeTD64_co] |
| | __le__: _ComparisonOp[_TD64Like_co, _ArrayLikeTD64_co] |
| | __gt__: _ComparisonOp[_TD64Like_co, _ArrayLikeTD64_co] |
| | __ge__: _ComparisonOp[_TD64Like_co, _ArrayLikeTD64_co] |
| |
|
| | class unsignedinteger(integer[_NBit1]): |
| | # NOTE: `uint64 + signedinteger -> float64` |
| | def __init__(self, value: _IntValue = ..., /) -> None: ... |
| | __add__: _UnsignedIntOp[_NBit1] |
| | __radd__: _UnsignedIntOp[_NBit1] |
| | __sub__: _UnsignedIntOp[_NBit1] |
| | __rsub__: _UnsignedIntOp[_NBit1] |
| | __mul__: _UnsignedIntOp[_NBit1] |
| | __rmul__: _UnsignedIntOp[_NBit1] |
| | __floordiv__: _UnsignedIntOp[_NBit1] |
| | __rfloordiv__: _UnsignedIntOp[_NBit1] |
| | __pow__: _UnsignedIntOp[_NBit1] |
| | __rpow__: _UnsignedIntOp[_NBit1] |
| | __lshift__: _UnsignedIntBitOp[_NBit1] |
| | __rlshift__: _UnsignedIntBitOp[_NBit1] |
| | __rshift__: _UnsignedIntBitOp[_NBit1] |
| | __rrshift__: _UnsignedIntBitOp[_NBit1] |
| | __and__: _UnsignedIntBitOp[_NBit1] |
| | __rand__: _UnsignedIntBitOp[_NBit1] |
| | __xor__: _UnsignedIntBitOp[_NBit1] |
| | __rxor__: _UnsignedIntBitOp[_NBit1] |
| | __or__: _UnsignedIntBitOp[_NBit1] |
| | __ror__: _UnsignedIntBitOp[_NBit1] |
| | __mod__: _UnsignedIntMod[_NBit1] |
| | __rmod__: _UnsignedIntMod[_NBit1] |
| | __divmod__: _UnsignedIntDivMod[_NBit1] |
| | __rdivmod__: _UnsignedIntDivMod[_NBit1] |
| |
|
| | uint8 = unsignedinteger[_8Bit] |
| | uint16 = unsignedinteger[_16Bit] |
| | uint32 = unsignedinteger[_32Bit] |
| | uint64 = unsignedinteger[_64Bit] |
| |
|
| | ubyte = unsignedinteger[_NBitByte] |
| | ushort = unsignedinteger[_NBitShort] |
| | uintc = unsignedinteger[_NBitIntC] |
| | uintp = unsignedinteger[_NBitIntP] |
| | uint = unsignedinteger[_NBitInt] |
| | ulonglong = unsignedinteger[_NBitLongLong] |
| |
|
| | class inexact(number[_NBit1]): # type: ignore |
| | def __getnewargs__(self: inexact[_64Bit]) -> tuple[float, ...]: ... |
| |
|
| | _IntType = TypeVar("_IntType", bound=integer[Any]) |
| | _FloatType = TypeVar('_FloatType', bound=floating[Any]) |
| |
|
| | class floating(inexact[_NBit1]): |
| | def __init__(self, value: _FloatValue = ..., /) -> None: ... |
| | def item( |
| | self, args: L[0] | tuple[()] | tuple[L[0]] = ..., |
| | /, |
| | ) -> float: ... |
| | def tolist(self) -> float: ... |
| | def is_integer(self) -> bool: ... |
| | def hex(self: float64) -> str: ... |
| | @classmethod |
| | def fromhex(cls: type[float64], string: str, /) -> float64: ... |
| | def as_integer_ratio(self) -> tuple[int, int]: ... |
| | def __ceil__(self: float64) -> int: ... |
| | def __floor__(self: float64) -> int: ... |
| | def __trunc__(self: float64) -> int: ... |
| | def __getnewargs__(self: float64) -> tuple[float]: ... |
| | def __getformat__(self: float64, typestr: L["double", "float"], /) -> str: ... |
| | @overload |
| | def __round__(self, ndigits: None = ...) -> int: ... |
| | @overload |
| | def __round__(self: _ScalarType, ndigits: SupportsIndex) -> _ScalarType: ... |
| | __add__: _FloatOp[_NBit1] |
| | __radd__: _FloatOp[_NBit1] |
| | __sub__: _FloatOp[_NBit1] |
| | __rsub__: _FloatOp[_NBit1] |
| | __mul__: _FloatOp[_NBit1] |
| | __rmul__: _FloatOp[_NBit1] |
| | __truediv__: _FloatOp[_NBit1] |
| | __rtruediv__: _FloatOp[_NBit1] |
| | __floordiv__: _FloatOp[_NBit1] |
| | __rfloordiv__: _FloatOp[_NBit1] |
| | __pow__: _FloatOp[_NBit1] |
| | __rpow__: _FloatOp[_NBit1] |
| | __mod__: _FloatMod[_NBit1] |
| | __rmod__: _FloatMod[_NBit1] |
| | __divmod__: _FloatDivMod[_NBit1] |
| | __rdivmod__: _FloatDivMod[_NBit1] |
| |
|
| | float16 = floating[_16Bit] |
| | float32 = floating[_32Bit] |
| | float64 = floating[_64Bit] |
| |
|
| | half = floating[_NBitHalf] |
| | single = floating[_NBitSingle] |
| | double = floating[_NBitDouble] |
| | float_ = floating[_NBitDouble] |
| | longdouble = floating[_NBitLongDouble] |
| | longfloat = floating[_NBitLongDouble] |
| |
|
| | # The main reason for `complexfloating` having two typevars is cosmetic. |
| | # It is used to clarify why `complex128`s precision is `_64Bit`, the latter |
| | # describing the two 64 bit floats representing its real and imaginary component |
| |
|
| | class complexfloating(inexact[_NBit1], Generic[_NBit1, _NBit2]): |
| | def __init__(self, value: _ComplexValue = ..., /) -> None: ... |
| | def item( |
| | self, args: L[0] | tuple[()] | tuple[L[0]] = ..., /, |
| | ) -> complex: ... |
| | def tolist(self) -> complex: ... |
| | @property |
| | def real(self) -> floating[_NBit1]: ... # type: ignore[override] |
| | @property |
| | def imag(self) -> floating[_NBit2]: ... # type: ignore[override] |
| | def __abs__(self) -> floating[_NBit1]: ... # type: ignore[override] |
| | def __getnewargs__(self: complex128) -> tuple[float, float]: ... |
| | # NOTE: Deprecated |
| | # def __round__(self, ndigits=...): ... |
| | __add__: _ComplexOp[_NBit1] |
| | __radd__: _ComplexOp[_NBit1] |
| | __sub__: _ComplexOp[_NBit1] |
| | __rsub__: _ComplexOp[_NBit1] |
| | __mul__: _ComplexOp[_NBit1] |
| | __rmul__: _ComplexOp[_NBit1] |
| | __truediv__: _ComplexOp[_NBit1] |
| | __rtruediv__: _ComplexOp[_NBit1] |
| | __pow__: _ComplexOp[_NBit1] |
| | __rpow__: _ComplexOp[_NBit1] |
| |
|
| | complex64 = complexfloating[_32Bit, _32Bit] |
| | complex128 = complexfloating[_64Bit, _64Bit] |
| |
|
| | csingle = complexfloating[_NBitSingle, _NBitSingle] |
| | singlecomplex = complexfloating[_NBitSingle, _NBitSingle] |
| | cdouble = complexfloating[_NBitDouble, _NBitDouble] |
| | complex_ = complexfloating[_NBitDouble, _NBitDouble] |
| | cfloat = complexfloating[_NBitDouble, _NBitDouble] |
| | clongdouble = complexfloating[_NBitLongDouble, _NBitLongDouble] |
| | clongfloat = complexfloating[_NBitLongDouble, _NBitLongDouble] |
| | longcomplex = complexfloating[_NBitLongDouble, _NBitLongDouble] |
| |
|
| | class flexible(generic): ... # type: ignore |
| |
|
| | # TODO: `item`/`tolist` returns either `bytes` or `tuple` |
| | # depending on whether or not it's used as an opaque bytes sequence |
| | # or a structure |
| | class void(flexible): |
| | @overload |
| | def __init__(self, value: _IntLike_co | bytes, /, dtype : None = ...) -> None: ... |
| | @overload |
| | def __init__(self, value: Any, /, dtype: _DTypeLikeVoid) -> None: ... |
| | @property |
| | def real(self: _ArraySelf) -> _ArraySelf: ... |
| | @property |
| | def imag(self: _ArraySelf) -> _ArraySelf: ... |
| | def setfield( |
| | self, val: ArrayLike, dtype: DTypeLike, offset: int = ... |
| | ) -> None: ... |
| | @overload |
| | def __getitem__(self, key: str | SupportsIndex) -> Any: ... |
| | @overload |
| | def __getitem__(self, key: list[str]) -> void: ... |
| | def __setitem__( |
| | self, |
| | key: str | list[str] | SupportsIndex, |
| | value: ArrayLike, |
| | ) -> None: ... |
| |
|
| | class character(flexible): # type: ignore |
| | def __int__(self) -> int: ... |
| | def __float__(self) -> float: ... |
| |
|
| | # NOTE: Most `np.bytes_` / `np.str_` methods return their |
| | # builtin `bytes` / `str` counterpart |
| |
|
| | class bytes_(character, bytes): |
| | @overload |
| | def __init__(self, value: object = ..., /) -> None: ... |
| | @overload |
| | def __init__( |
| | self, value: str, /, encoding: str = ..., errors: str = ... |
| | ) -> None: ... |
| | def item( |
| | self, args: L[0] | tuple[()] | tuple[L[0]] = ..., /, |
| | ) -> bytes: ... |
| | def tolist(self) -> bytes: ... |
| |
|
| | string_ = bytes_ |
| |
|
| | class str_(character, str): |
| | @overload |
| | def __init__(self, value: object = ..., /) -> None: ... |
| | @overload |
| | def __init__( |
| | self, value: bytes, /, encoding: str = ..., errors: str = ... |
| | ) -> None: ... |
| | def item( |
| | self, args: L[0] | tuple[()] | tuple[L[0]] = ..., /, |
| | ) -> str: ... |
| | def tolist(self) -> str: ... |
| |
|
| | unicode_ = str_ |
| |
|
| | # |
| | # Constants |
| | # |
| |
|
| | Inf: Final[float] |
| | Infinity: Final[float] |
| | NAN: Final[float] |
| | NINF: Final[float] |
| | NZERO: Final[float] |
| | NaN: Final[float] |
| | PINF: Final[float] |
| | PZERO: Final[float] |
| | e: Final[float] |
| | euler_gamma: Final[float] |
| | inf: Final[float] |
| | infty: Final[float] |
| | nan: Final[float] |
| | pi: Final[float] |
| |
|
| | ERR_IGNORE: L[0] |
| | ERR_WARN: L[1] |
| | ERR_RAISE: L[2] |
| | ERR_CALL: L[3] |
| | ERR_PRINT: L[4] |
| | ERR_LOG: L[5] |
| | ERR_DEFAULT: L[521] |
| |
|
| | SHIFT_DIVIDEBYZERO: L[0] |
| | SHIFT_OVERFLOW: L[3] |
| | SHIFT_UNDERFLOW: L[6] |
| | SHIFT_INVALID: L[9] |
| |
|
| | FPE_DIVIDEBYZERO: L[1] |
| | FPE_OVERFLOW: L[2] |
| | FPE_UNDERFLOW: L[4] |
| | FPE_INVALID: L[8] |
| |
|
| | FLOATING_POINT_SUPPORT: L[1] |
| | UFUNC_BUFSIZE_DEFAULT = BUFSIZE |
| |
|
| | little_endian: Final[bool] |
| | True_: Final[bool_] |
| | False_: Final[bool_] |
| |
|
| | UFUNC_PYVALS_NAME: L["UFUNC_PYVALS"] |
| |
|
| | newaxis: None |
| |
|
| | # See `numpy._typing._ufunc` for more concrete nin-/nout-specific stubs |
| | @final |
| | class ufunc: |
| | @property |
| | def __name__(self) -> str: ... |
| | @property |
| | def __doc__(self) -> str: ... |
| | __call__: Callable[..., Any] |
| | @property |
| | def nin(self) -> int: ... |
| | @property |
| | def nout(self) -> int: ... |
| | @property |
| | def nargs(self) -> int: ... |
| | @property |
| | def ntypes(self) -> int: ... |
| | @property |
| | def types(self) -> list[str]: ... |
| | # Broad return type because it has to encompass things like |
| | # |
| | # >>> np.logical_and.identity is True |
| | # True |
| | # >>> np.add.identity is 0 |
| | # True |
| | # >>> np.sin.identity is None |
| | # True |
| | # |
| | # and any user-defined ufuncs. |
| | @property |
| | def identity(self) -> Any: ... |
| | # This is None for ufuncs and a string for gufuncs. |
| | @property |
| | def signature(self) -> None | str: ... |
| | # The next four methods will always exist, but they will just |
| | # raise a ValueError ufuncs with that don't accept two input |
| | # arguments and return one output argument. Because of that we |
| | # can't type them very precisely. |
| | reduce: Any |
| | accumulate: Any |
| | reduceat: Any |
| | outer: Any |
| | # Similarly at won't be defined for ufuncs that return multiple |
| | # outputs, so we can't type it very precisely. |
| | at: Any |
| |
|
| | # Parameters: `__name__`, `ntypes` and `identity` |
| | absolute: _UFunc_Nin1_Nout1[L['absolute'], L[20], None] |
| | add: _UFunc_Nin2_Nout1[L['add'], L[22], L[0]] |
| | arccos: _UFunc_Nin1_Nout1[L['arccos'], L[8], None] |
| | arccosh: _UFunc_Nin1_Nout1[L['arccosh'], L[8], None] |
| | arcsin: _UFunc_Nin1_Nout1[L['arcsin'], L[8], None] |
| | arcsinh: _UFunc_Nin1_Nout1[L['arcsinh'], L[8], None] |
| | arctan2: _UFunc_Nin2_Nout1[L['arctan2'], L[5], None] |
| | arctan: _UFunc_Nin1_Nout1[L['arctan'], L[8], None] |
| | arctanh: _UFunc_Nin1_Nout1[L['arctanh'], L[8], None] |
| | bitwise_and: _UFunc_Nin2_Nout1[L['bitwise_and'], L[12], L[-1]] |
| | bitwise_not: _UFunc_Nin1_Nout1[L['invert'], L[12], None] |
| | bitwise_or: _UFunc_Nin2_Nout1[L['bitwise_or'], L[12], L[0]] |
| | bitwise_xor: _UFunc_Nin2_Nout1[L['bitwise_xor'], L[12], L[0]] |
| | cbrt: _UFunc_Nin1_Nout1[L['cbrt'], L[5], None] |
| | ceil: _UFunc_Nin1_Nout1[L['ceil'], L[7], None] |
| | conj: _UFunc_Nin1_Nout1[L['conjugate'], L[18], None] |
| | conjugate: _UFunc_Nin1_Nout1[L['conjugate'], L[18], None] |
| | copysign: _UFunc_Nin2_Nout1[L['copysign'], L[4], None] |
| | cos: _UFunc_Nin1_Nout1[L['cos'], L[9], None] |
| | cosh: _UFunc_Nin1_Nout1[L['cosh'], L[8], None] |
| | deg2rad: _UFunc_Nin1_Nout1[L['deg2rad'], L[5], None] |
| | degrees: _UFunc_Nin1_Nout1[L['degrees'], L[5], None] |
| | divide: _UFunc_Nin2_Nout1[L['true_divide'], L[11], None] |
| | divmod: _UFunc_Nin2_Nout2[L['divmod'], L[15], None] |
| | equal: _UFunc_Nin2_Nout1[L['equal'], L[23], None] |
| | exp2: _UFunc_Nin1_Nout1[L['exp2'], L[8], None] |
| | exp: _UFunc_Nin1_Nout1[L['exp'], L[10], None] |
| | expm1: _UFunc_Nin1_Nout1[L['expm1'], L[8], None] |
| | fabs: _UFunc_Nin1_Nout1[L['fabs'], L[5], None] |
| | float_power: _UFunc_Nin2_Nout1[L['float_power'], L[4], None] |
| | floor: _UFunc_Nin1_Nout1[L['floor'], L[7], None] |
| | floor_divide: _UFunc_Nin2_Nout1[L['floor_divide'], L[21], None] |
| | fmax: _UFunc_Nin2_Nout1[L['fmax'], L[21], None] |
| | fmin: _UFunc_Nin2_Nout1[L['fmin'], L[21], None] |
| | fmod: _UFunc_Nin2_Nout1[L['fmod'], L[15], None] |
| | frexp: _UFunc_Nin1_Nout2[L['frexp'], L[4], None] |
| | gcd: _UFunc_Nin2_Nout1[L['gcd'], L[11], L[0]] |
| | greater: _UFunc_Nin2_Nout1[L['greater'], L[23], None] |
| | greater_equal: _UFunc_Nin2_Nout1[L['greater_equal'], L[23], None] |
| | heaviside: _UFunc_Nin2_Nout1[L['heaviside'], L[4], None] |
| | hypot: _UFunc_Nin2_Nout1[L['hypot'], L[5], L[0]] |
| | invert: _UFunc_Nin1_Nout1[L['invert'], L[12], None] |
| | isfinite: _UFunc_Nin1_Nout1[L['isfinite'], L[20], None] |
| | isinf: _UFunc_Nin1_Nout1[L['isinf'], L[20], None] |
| | isnan: _UFunc_Nin1_Nout1[L['isnan'], L[20], None] |
| | isnat: _UFunc_Nin1_Nout1[L['isnat'], L[2], None] |
| | lcm: _UFunc_Nin2_Nout1[L['lcm'], L[11], None] |
| | ldexp: _UFunc_Nin2_Nout1[L['ldexp'], L[8], None] |
| | left_shift: _UFunc_Nin2_Nout1[L['left_shift'], L[11], None] |
| | less: _UFunc_Nin2_Nout1[L['less'], L[23], None] |
| | less_equal: _UFunc_Nin2_Nout1[L['less_equal'], L[23], None] |
| | log10: _UFunc_Nin1_Nout1[L['log10'], L[8], None] |
| | log1p: _UFunc_Nin1_Nout1[L['log1p'], L[8], None] |
| | log2: _UFunc_Nin1_Nout1[L['log2'], L[8], None] |
| | log: _UFunc_Nin1_Nout1[L['log'], L[10], None] |
| | logaddexp2: _UFunc_Nin2_Nout1[L['logaddexp2'], L[4], float] |
| | logaddexp: _UFunc_Nin2_Nout1[L['logaddexp'], L[4], float] |
| | logical_and: _UFunc_Nin2_Nout1[L['logical_and'], L[20], L[True]] |
| | logical_not: _UFunc_Nin1_Nout1[L['logical_not'], L[20], None] |
| | logical_or: _UFunc_Nin2_Nout1[L['logical_or'], L[20], L[False]] |
| | logical_xor: _UFunc_Nin2_Nout1[L['logical_xor'], L[19], L[False]] |
| | matmul: _GUFunc_Nin2_Nout1[L['matmul'], L[19], None] |
| | maximum: _UFunc_Nin2_Nout1[L['maximum'], L[21], None] |
| | minimum: _UFunc_Nin2_Nout1[L['minimum'], L[21], None] |
| | mod: _UFunc_Nin2_Nout1[L['remainder'], L[16], None] |
| | modf: _UFunc_Nin1_Nout2[L['modf'], L[4], None] |
| | multiply: _UFunc_Nin2_Nout1[L['multiply'], L[23], L[1]] |
| | negative: _UFunc_Nin1_Nout1[L['negative'], L[19], None] |
| | nextafter: _UFunc_Nin2_Nout1[L['nextafter'], L[4], None] |
| | not_equal: _UFunc_Nin2_Nout1[L['not_equal'], L[23], None] |
| | positive: _UFunc_Nin1_Nout1[L['positive'], L[19], None] |
| | power: _UFunc_Nin2_Nout1[L['power'], L[18], None] |
| | rad2deg: _UFunc_Nin1_Nout1[L['rad2deg'], L[5], None] |
| | radians: _UFunc_Nin1_Nout1[L['radians'], L[5], None] |
| | reciprocal: _UFunc_Nin1_Nout1[L['reciprocal'], L[18], None] |
| | remainder: _UFunc_Nin2_Nout1[L['remainder'], L[16], None] |
| | right_shift: _UFunc_Nin2_Nout1[L['right_shift'], L[11], None] |
| | rint: _UFunc_Nin1_Nout1[L['rint'], L[10], None] |
| | sign: _UFunc_Nin1_Nout1[L['sign'], L[19], None] |
| | signbit: _UFunc_Nin1_Nout1[L['signbit'], L[4], None] |
| | sin: _UFunc_Nin1_Nout1[L['sin'], L[9], None] |
| | sinh: _UFunc_Nin1_Nout1[L['sinh'], L[8], None] |
| | spacing: _UFunc_Nin1_Nout1[L['spacing'], L[4], None] |
| | sqrt: _UFunc_Nin1_Nout1[L['sqrt'], L[10], None] |
| | square: _UFunc_Nin1_Nout1[L['square'], L[18], None] |
| | subtract: _UFunc_Nin2_Nout1[L['subtract'], L[21], None] |
| | tan: _UFunc_Nin1_Nout1[L['tan'], L[8], None] |
| | tanh: _UFunc_Nin1_Nout1[L['tanh'], L[8], None] |
| | true_divide: _UFunc_Nin2_Nout1[L['true_divide'], L[11], None] |
| | trunc: _UFunc_Nin1_Nout1[L['trunc'], L[7], None] |
| |
|
| | abs = absolute |
| |
|
| | class _CopyMode(enum.Enum): |
| | ALWAYS: L[True] |
| | IF_NEEDED: L[False] |
| | NEVER: L[2] |
| |
|
| | # Warnings |
| | class RankWarning(UserWarning): ... |
| |
|
| | _CallType = TypeVar("_CallType", bound=_ErrFunc | _SupportsWrite[str]) |
| |
|
| | class errstate(Generic[_CallType], ContextDecorator): |
| | call: _CallType |
| | kwargs: _ErrDictOptional |
| |
|
| | # Expand `**kwargs` into explicit keyword-only arguments |
| | def __init__( |
| | self, |
| | *, |
| | call: _CallType = ..., |
| | all: None | _ErrKind = ..., |
| | divide: None | _ErrKind = ..., |
| | over: None | _ErrKind = ..., |
| | under: None | _ErrKind = ..., |
| | invalid: None | _ErrKind = ..., |
| | ) -> None: ... |
| | def __enter__(self) -> None: ... |
| | def __exit__( |
| | self, |
| | exc_type: None | type[BaseException], |
| | exc_value: None | BaseException, |
| | traceback: None | TracebackType, |
| | /, |
| | ) -> None: ... |
| |
|
| | @contextmanager |
| | def _no_nep50_warning() -> Generator[None, None, None]: ... |
| | def _get_promotion_state() -> str: ... |
| | def _set_promotion_state(state: str, /) -> None: ... |
| |
|
| | class ndenumerate(Generic[_ScalarType]): |
| | iter: flatiter[NDArray[_ScalarType]] |
| | @overload |
| | def __new__( |
| | cls, arr: _FiniteNestedSequence[_SupportsArray[dtype[_ScalarType]]], |
| | ) -> ndenumerate[_ScalarType]: ... |
| | @overload |
| | def __new__(cls, arr: str | _NestedSequence[str]) -> ndenumerate[str_]: ... |
| | @overload |
| | def __new__(cls, arr: bytes | _NestedSequence[bytes]) -> ndenumerate[bytes_]: ... |
| | @overload |
| | def __new__(cls, arr: bool | _NestedSequence[bool]) -> ndenumerate[bool_]: ... |
| | @overload |
| | def __new__(cls, arr: int | _NestedSequence[int]) -> ndenumerate[int_]: ... |
| | @overload |
| | def __new__(cls, arr: float | _NestedSequence[float]) -> ndenumerate[float_]: ... |
| | @overload |
| | def __new__(cls, arr: complex | _NestedSequence[complex]) -> ndenumerate[complex_]: ... |
| | def __next__(self: ndenumerate[_ScalarType]) -> tuple[_Shape, _ScalarType]: ... |
| | def __iter__(self: _T) -> _T: ... |
| |
|
| | class ndindex: |
| | @overload |
| | def __init__(self, shape: tuple[SupportsIndex, ...], /) -> None: ... |
| | @overload |
| | def __init__(self, *shape: SupportsIndex) -> None: ... |
| | def __iter__(self: _T) -> _T: ... |
| | def __next__(self) -> _Shape: ... |
| |
|
| | class DataSource: |
| | def __init__( |
| | self, |
| | destpath: None | str | os.PathLike[str] = ..., |
| | ) -> None: ... |
| | def __del__(self) -> None: ... |
| | def abspath(self, path: str) -> str: ... |
| | def exists(self, path: str) -> bool: ... |
| |
|
| | # Whether the file-object is opened in string or bytes mode (by default) |
| | # depends on the file-extension of `path` |
| | def open( |
| | self, |
| | path: str, |
| | mode: str = ..., |
| | encoding: None | str = ..., |
| | newline: None | str = ..., |
| | ) -> IO[Any]: ... |
| |
|
| | # TODO: The type of each `__next__` and `iters` return-type depends |
| | # on the length and dtype of `args`; we can't describe this behavior yet |
| | # as we lack variadics (PEP 646). |
| | @final |
| | class broadcast: |
| | def __new__(cls, *args: ArrayLike) -> broadcast: ... |
| | @property |
| | def index(self) -> int: ... |
| | @property |
| | def iters(self) -> tuple[flatiter[Any], ...]: ... |
| | @property |
| | def nd(self) -> int: ... |
| | @property |
| | def ndim(self) -> int: ... |
| | @property |
| | def numiter(self) -> int: ... |
| | @property |
| | def shape(self) -> _Shape: ... |
| | @property |
| | def size(self) -> int: ... |
| | def __next__(self) -> tuple[Any, ...]: ... |
| | def __iter__(self: _T) -> _T: ... |
| | def reset(self) -> None: ... |
| |
|
| | @final |
| | class busdaycalendar: |
| | def __new__( |
| | cls, |
| | weekmask: ArrayLike = ..., |
| | holidays: ArrayLike | dt.date | _NestedSequence[dt.date] = ..., |
| | ) -> busdaycalendar: ... |
| | @property |
| | def weekmask(self) -> NDArray[bool_]: ... |
| | @property |
| | def holidays(self) -> NDArray[datetime64]: ... |
| |
|
| | class finfo(Generic[_FloatType]): |
| | dtype: dtype[_FloatType] |
| | bits: int |
| | eps: _FloatType |
| | epsneg: _FloatType |
| | iexp: int |
| | machep: int |
| | max: _FloatType |
| | maxexp: int |
| | min: _FloatType |
| | minexp: int |
| | negep: int |
| | nexp: int |
| | nmant: int |
| | precision: int |
| | resolution: _FloatType |
| | smallest_subnormal: _FloatType |
| | @property |
| | def smallest_normal(self) -> _FloatType: ... |
| | @property |
| | def tiny(self) -> _FloatType: ... |
| | @overload |
| | def __new__( |
| | cls, dtype: inexact[_NBit1] | _DTypeLike[inexact[_NBit1]] |
| | ) -> finfo[floating[_NBit1]]: ... |
| | @overload |
| | def __new__( |
| | cls, dtype: complex | float | type[complex] | type[float] |
| | ) -> finfo[float_]: ... |
| | @overload |
| | def __new__( |
| | cls, dtype: str |
| | ) -> finfo[floating[Any]]: ... |
| |
|
| | class iinfo(Generic[_IntType]): |
| | dtype: dtype[_IntType] |
| | kind: str |
| | bits: int |
| | key: str |
| | @property |
| | def min(self) -> int: ... |
| | @property |
| | def max(self) -> int: ... |
| |
|
| | @overload |
| | def __new__(cls, dtype: _IntType | _DTypeLike[_IntType]) -> iinfo[_IntType]: ... |
| | @overload |
| | def __new__(cls, dtype: int | type[int]) -> iinfo[int_]: ... |
| | @overload |
| | def __new__(cls, dtype: str) -> iinfo[Any]: ... |
| |
|
| | class format_parser: |
| | dtype: dtype[void] |
| | def __init__( |
| | self, |
| | formats: DTypeLike, |
| | names: None | str | Sequence[str], |
| | titles: None | str | Sequence[str], |
| | aligned: bool = ..., |
| | byteorder: None | _ByteOrder = ..., |
| | ) -> None: ... |
| |
|
| | class recarray(ndarray[_ShapeType, _DType_co]): |
| | # NOTE: While not strictly mandatory, we're demanding here that arguments |
| | # for the `format_parser`- and `dtype`-based dtype constructors are |
| | # mutually exclusive |
| | @overload |
| | def __new__( |
| | subtype, |
| | shape: _ShapeLike, |
| | dtype: None = ..., |
| | buf: None | _SupportsBuffer = ..., |
| | offset: SupportsIndex = ..., |
| | strides: None | _ShapeLike = ..., |
| | *, |
| | formats: DTypeLike, |
| | names: None | str | Sequence[str] = ..., |
| | titles: None | str | Sequence[str] = ..., |
| | byteorder: None | _ByteOrder = ..., |
| | aligned: bool = ..., |
| | order: _OrderKACF = ..., |
| | ) -> recarray[Any, dtype[record]]: ... |
| | @overload |
| | def __new__( |
| | subtype, |
| | shape: _ShapeLike, |
| | dtype: DTypeLike, |
| | buf: None | _SupportsBuffer = ..., |
| | offset: SupportsIndex = ..., |
| | strides: None | _ShapeLike = ..., |
| | formats: None = ..., |
| | names: None = ..., |
| | titles: None = ..., |
| | byteorder: None = ..., |
| | aligned: L[False] = ..., |
| | order: _OrderKACF = ..., |
| | ) -> recarray[Any, dtype[Any]]: ... |
| | def __array_finalize__(self, obj: object) -> None: ... |
| | def __getattribute__(self, attr: str) -> Any: ... |
| | def __setattr__(self, attr: str, val: ArrayLike) -> None: ... |
| | @overload |
| | def __getitem__(self, indx: ( |
| | SupportsIndex |
| | | _ArrayLikeInt_co |
| | | tuple[SupportsIndex | _ArrayLikeInt_co, ...] |
| | )) -> Any: ... |
| | @overload |
| | def __getitem__(self: recarray[Any, dtype[void]], indx: ( |
| | None |
| | | slice |
| | | ellipsis |
| | | SupportsIndex |
| | | _ArrayLikeInt_co |
| | | tuple[None | slice | ellipsis | _ArrayLikeInt_co | SupportsIndex, ...] |
| | )) -> recarray[Any, _DType_co]: ... |
| | @overload |
| | def __getitem__(self, indx: ( |
| | None |
| | | slice |
| | | ellipsis |
| | | SupportsIndex |
| | | _ArrayLikeInt_co |
| | | tuple[None | slice | ellipsis | _ArrayLikeInt_co | SupportsIndex, ...] |
| | )) -> ndarray[Any, _DType_co]: ... |
| | @overload |
| | def __getitem__(self, indx: str) -> NDArray[Any]: ... |
| | @overload |
| | def __getitem__(self, indx: list[str]) -> recarray[_ShapeType, dtype[record]]: ... |
| | @overload |
| | def field(self, attr: int | str, val: None = ...) -> Any: ... |
| | @overload |
| | def field(self, attr: int | str, val: ArrayLike) -> None: ... |
| |
|
| | class record(void): |
| | def __getattribute__(self, attr: str) -> Any: ... |
| | def __setattr__(self, attr: str, val: ArrayLike) -> None: ... |
| | def pprint(self) -> str: ... |
| | @overload |
| | def __getitem__(self, key: str | SupportsIndex) -> Any: ... |
| | @overload |
| | def __getitem__(self, key: list[str]) -> record: ... |
| |
|
| | _NDIterFlagsKind = L[ |
| | "buffered", |
| | "c_index", |
| | "copy_if_overlap", |
| | "common_dtype", |
| | "delay_bufalloc", |
| | "external_loop", |
| | "f_index", |
| | "grow_inner", "growinner", |
| | "multi_index", |
| | "ranged", |
| | "refs_ok", |
| | "reduce_ok", |
| | "zerosize_ok", |
| | ] |
| |
|
| | _NDIterOpFlagsKind = L[ |
| | "aligned", |
| | "allocate", |
| | "arraymask", |
| | "copy", |
| | "config", |
| | "nbo", |
| | "no_subtype", |
| | "no_broadcast", |
| | "overlap_assume_elementwise", |
| | "readonly", |
| | "readwrite", |
| | "updateifcopy", |
| | "virtual", |
| | "writeonly", |
| | "writemasked" |
| | ] |
| |
|
| | @final |
| | class nditer: |
| | def __new__( |
| | cls, |
| | op: ArrayLike | Sequence[ArrayLike], |
| | flags: None | Sequence[_NDIterFlagsKind] = ..., |
| | op_flags: None | Sequence[Sequence[_NDIterOpFlagsKind]] = ..., |
| | op_dtypes: DTypeLike | Sequence[DTypeLike] = ..., |
| | order: _OrderKACF = ..., |
| | casting: _CastingKind = ..., |
| | op_axes: None | Sequence[Sequence[SupportsIndex]] = ..., |
| | itershape: None | _ShapeLike = ..., |
| | buffersize: SupportsIndex = ..., |
| | ) -> nditer: ... |
| | def __enter__(self) -> nditer: ... |
| | def __exit__( |
| | self, |
| | exc_type: None | type[BaseException], |
| | exc_value: None | BaseException, |
| | traceback: None | TracebackType, |
| | ) -> None: ... |
| | def __iter__(self) -> nditer: ... |
| | def __next__(self) -> tuple[NDArray[Any], ...]: ... |
| | def __len__(self) -> int: ... |
| | def __copy__(self) -> nditer: ... |
| | @overload |
| | def __getitem__(self, index: SupportsIndex) -> NDArray[Any]: ... |
| | @overload |
| | def __getitem__(self, index: slice) -> tuple[NDArray[Any], ...]: ... |
| | def __setitem__(self, index: slice | SupportsIndex, value: ArrayLike) -> None: ... |
| | def close(self) -> None: ... |
| | def copy(self) -> nditer: ... |
| | def debug_print(self) -> None: ... |
| | def enable_external_loop(self) -> None: ... |
| | def iternext(self) -> bool: ... |
| | def remove_axis(self, i: SupportsIndex, /) -> None: ... |
| | def remove_multi_index(self) -> None: ... |
| | def reset(self) -> None: ... |
| | @property |
| | def dtypes(self) -> tuple[dtype[Any], ...]: ... |
| | @property |
| | def finished(self) -> bool: ... |
| | @property |
| | def has_delayed_bufalloc(self) -> bool: ... |
| | @property |
| | def has_index(self) -> bool: ... |
| | @property |
| | def has_multi_index(self) -> bool: ... |
| | @property |
| | def index(self) -> int: ... |
| | @property |
| | def iterationneedsapi(self) -> bool: ... |
| | @property |
| | def iterindex(self) -> int: ... |
| | @property |
| | def iterrange(self) -> tuple[int, ...]: ... |
| | @property |
| | def itersize(self) -> int: ... |
| | @property |
| | def itviews(self) -> tuple[NDArray[Any], ...]: ... |
| | @property |
| | def multi_index(self) -> tuple[int, ...]: ... |
| | @property |
| | def ndim(self) -> int: ... |
| | @property |
| | def nop(self) -> int: ... |
| | @property |
| | def operands(self) -> tuple[NDArray[Any], ...]: ... |
| | @property |
| | def shape(self) -> tuple[int, ...]: ... |
| | @property |
| | def value(self) -> tuple[NDArray[Any], ...]: ... |
| |
|
| | _MemMapModeKind = L[ |
| | "readonly", "r", |
| | "copyonwrite", "c", |
| | "readwrite", "r+", |
| | "write", "w+", |
| | ] |
| |
|
| | class memmap(ndarray[_ShapeType, _DType_co]): |
| | __array_priority__: ClassVar[float] |
| | filename: str | None |
| | offset: int |
| | mode: str |
| | @overload |
| | def __new__( |
| | subtype, |
| | filename: str | bytes | os.PathLike[str] | os.PathLike[bytes] | _MemMapIOProtocol, |
| | dtype: type[uint8] = ..., |
| | mode: _MemMapModeKind = ..., |
| | offset: int = ..., |
| | shape: None | int | tuple[int, ...] = ..., |
| | order: _OrderKACF = ..., |
| | ) -> memmap[Any, dtype[uint8]]: ... |
| | @overload |
| | def __new__( |
| | subtype, |
| | filename: str | bytes | os.PathLike[str] | os.PathLike[bytes] | _MemMapIOProtocol, |
| | dtype: _DTypeLike[_ScalarType], |
| | mode: _MemMapModeKind = ..., |
| | offset: int = ..., |
| | shape: None | int | tuple[int, ...] = ..., |
| | order: _OrderKACF = ..., |
| | ) -> memmap[Any, dtype[_ScalarType]]: ... |
| | @overload |
| | def __new__( |
| | subtype, |
| | filename: str | bytes | os.PathLike[str] | os.PathLike[bytes] | _MemMapIOProtocol, |
| | dtype: DTypeLike, |
| | mode: _MemMapModeKind = ..., |
| | offset: int = ..., |
| | shape: None | int | tuple[int, ...] = ..., |
| | order: _OrderKACF = ..., |
| | ) -> memmap[Any, dtype[Any]]: ... |
| | def __array_finalize__(self, obj: object) -> None: ... |
| | def __array_wrap__( |
| | self, |
| | array: memmap[_ShapeType, _DType_co], |
| | context: None | tuple[ufunc, tuple[Any, ...], int] = ..., |
| | ) -> Any: ... |
| | def flush(self) -> None: ... |
| |
|
| | # TODO: Add a mypy plugin for managing functions whose output type is dependent |
| | # on the literal value of some sort of signature (e.g. `einsum` and `vectorize`) |
| | class vectorize: |
| | pyfunc: Callable[..., Any] |
| | cache: bool |
| | signature: None | str |
| | otypes: None | str |
| | excluded: set[int | str] |
| | __doc__: None | str |
| | def __init__( |
| | self, |
| | pyfunc: Callable[..., Any], |
| | otypes: None | str | Iterable[DTypeLike] = ..., |
| | doc: None | str = ..., |
| | excluded: None | Iterable[int | str] = ..., |
| | cache: bool = ..., |
| | signature: None | str = ..., |
| | ) -> None: ... |
| | def __call__(self, *args: Any, **kwargs: Any) -> Any: ... |
| |
|
| | class poly1d: |
| | @property |
| | def variable(self) -> str: ... |
| | @property |
| | def order(self) -> int: ... |
| | @property |
| | def o(self) -> int: ... |
| | @property |
| | def roots(self) -> NDArray[Any]: ... |
| | @property |
| | def r(self) -> NDArray[Any]: ... |
| |
|
| | @property |
| | def coeffs(self) -> NDArray[Any]: ... |
| | @coeffs.setter |
| | def coeffs(self, value: NDArray[Any]) -> None: ... |
| |
|
| | @property |
| | def c(self) -> NDArray[Any]: ... |
| | @c.setter |
| | def c(self, value: NDArray[Any]) -> None: ... |
| |
|
| | @property |
| | def coef(self) -> NDArray[Any]: ... |
| | @coef.setter |
| | def coef(self, value: NDArray[Any]) -> None: ... |
| |
|
| | @property |
| | def coefficients(self) -> NDArray[Any]: ... |
| | @coefficients.setter |
| | def coefficients(self, value: NDArray[Any]) -> None: ... |
| |
|
| | __hash__: ClassVar[None] # type: ignore |
| |
|
| | @overload |
| | def __array__(self, t: None = ...) -> NDArray[Any]: ... |
| | @overload |
| | def __array__(self, t: _DType) -> ndarray[Any, _DType]: ... |
| |
|
| | @overload |
| | def __call__(self, val: _ScalarLike_co) -> Any: ... |
| | @overload |
| | def __call__(self, val: poly1d) -> poly1d: ... |
| | @overload |
| | def __call__(self, val: ArrayLike) -> NDArray[Any]: ... |
| |
|
| | def __init__( |
| | self, |
| | c_or_r: ArrayLike, |
| | r: bool = ..., |
| | variable: None | str = ..., |
| | ) -> None: ... |
| | def __len__(self) -> int: ... |
| | def __neg__(self) -> poly1d: ... |
| | def __pos__(self) -> poly1d: ... |
| | def __mul__(self, other: ArrayLike) -> poly1d: ... |
| | def __rmul__(self, other: ArrayLike) -> poly1d: ... |
| | def __add__(self, other: ArrayLike) -> poly1d: ... |
| | def __radd__(self, other: ArrayLike) -> poly1d: ... |
| | def __pow__(self, val: _FloatLike_co) -> poly1d: ... # Integral floats are accepted |
| | def __sub__(self, other: ArrayLike) -> poly1d: ... |
| | def __rsub__(self, other: ArrayLike) -> poly1d: ... |
| | def __div__(self, other: ArrayLike) -> poly1d: ... |
| | def __truediv__(self, other: ArrayLike) -> poly1d: ... |
| | def __rdiv__(self, other: ArrayLike) -> poly1d: ... |
| | def __rtruediv__(self, other: ArrayLike) -> poly1d: ... |
| | def __getitem__(self, val: int) -> Any: ... |
| | def __setitem__(self, key: int, val: Any) -> None: ... |
| | def __iter__(self) -> Iterator[Any]: ... |
| | def deriv(self, m: SupportsInt | SupportsIndex = ...) -> poly1d: ... |
| | def integ( |
| | self, |
| | m: SupportsInt | SupportsIndex = ..., |
| | k: None | _ArrayLikeComplex_co | _ArrayLikeObject_co = ..., |
| | ) -> poly1d: ... |
| |
|
| | class matrix(ndarray[_ShapeType, _DType_co]): |
| | __array_priority__: ClassVar[float] |
| | def __new__( |
| | subtype, |
| | data: ArrayLike, |
| | dtype: DTypeLike = ..., |
| | copy: bool = ..., |
| | ) -> matrix[Any, Any]: ... |
| | def __array_finalize__(self, obj: object) -> None: ... |
| |
|
| | @overload |
| | def __getitem__(self, key: ( |
| | SupportsIndex |
| | | _ArrayLikeInt_co |
| | | tuple[SupportsIndex | _ArrayLikeInt_co, ...] |
| | )) -> Any: ... |
| | @overload |
| | def __getitem__(self, key: ( |
| | None |
| | | slice |
| | | ellipsis |
| | | SupportsIndex |
| | | _ArrayLikeInt_co |
| | | tuple[None | slice | ellipsis | _ArrayLikeInt_co | SupportsIndex, ...] |
| | )) -> matrix[Any, _DType_co]: ... |
| | @overload |
| | def __getitem__(self: NDArray[void], key: str) -> matrix[Any, dtype[Any]]: ... |
| | @overload |
| | def __getitem__(self: NDArray[void], key: list[str]) -> matrix[_ShapeType, dtype[void]]: ... |
| |
|
| | def __mul__(self, other: ArrayLike) -> matrix[Any, Any]: ... |
| | def __rmul__(self, other: ArrayLike) -> matrix[Any, Any]: ... |
| | def __imul__(self, other: ArrayLike) -> matrix[_ShapeType, _DType_co]: ... |
| | def __pow__(self, other: ArrayLike) -> matrix[Any, Any]: ... |
| | def __ipow__(self, other: ArrayLike) -> matrix[_ShapeType, _DType_co]: ... |
| |
|
| | @overload |
| | def sum(self, axis: None = ..., dtype: DTypeLike = ..., out: None = ...) -> Any: ... |
| | @overload |
| | def sum(self, axis: _ShapeLike, dtype: DTypeLike = ..., out: None = ...) -> matrix[Any, Any]: ... |
| | @overload |
| | def sum(self, axis: None | _ShapeLike = ..., dtype: DTypeLike = ..., out: _NdArraySubClass = ...) -> _NdArraySubClass: ... |
| |
|
| | @overload |
| | def mean(self, axis: None = ..., dtype: DTypeLike = ..., out: None = ...) -> Any: ... |
| | @overload |
| | def mean(self, axis: _ShapeLike, dtype: DTypeLike = ..., out: None = ...) -> matrix[Any, Any]: ... |
| | @overload |
| | def mean(self, axis: None | _ShapeLike = ..., dtype: DTypeLike = ..., out: _NdArraySubClass = ...) -> _NdArraySubClass: ... |
| |
|
| | @overload |
| | def std(self, axis: None = ..., dtype: DTypeLike = ..., out: None = ..., ddof: float = ...) -> Any: ... |
| | @overload |
| | def std(self, axis: _ShapeLike, dtype: DTypeLike = ..., out: None = ..., ddof: float = ...) -> matrix[Any, Any]: ... |
| | @overload |
| | def std(self, axis: None | _ShapeLike = ..., dtype: DTypeLike = ..., out: _NdArraySubClass = ..., ddof: float = ...) -> _NdArraySubClass: ... |
| |
|
| | @overload |
| | def var(self, axis: None = ..., dtype: DTypeLike = ..., out: None = ..., ddof: float = ...) -> Any: ... |
| | @overload |
| | def var(self, axis: _ShapeLike, dtype: DTypeLike = ..., out: None = ..., ddof: float = ...) -> matrix[Any, Any]: ... |
| | @overload |
| | def var(self, axis: None | _ShapeLike = ..., dtype: DTypeLike = ..., out: _NdArraySubClass = ..., ddof: float = ...) -> _NdArraySubClass: ... |
| |
|
| | @overload |
| | def prod(self, axis: None = ..., dtype: DTypeLike = ..., out: None = ...) -> Any: ... |
| | @overload |
| | def prod(self, axis: _ShapeLike, dtype: DTypeLike = ..., out: None = ...) -> matrix[Any, Any]: ... |
| | @overload |
| | def prod(self, axis: None | _ShapeLike = ..., dtype: DTypeLike = ..., out: _NdArraySubClass = ...) -> _NdArraySubClass: ... |
| |
|
| | @overload |
| | def any(self, axis: None = ..., out: None = ...) -> bool_: ... |
| | @overload |
| | def any(self, axis: _ShapeLike, out: None = ...) -> matrix[Any, dtype[bool_]]: ... |
| | @overload |
| | def any(self, axis: None | _ShapeLike = ..., out: _NdArraySubClass = ...) -> _NdArraySubClass: ... |
| |
|
| | @overload |
| | def all(self, axis: None = ..., out: None = ...) -> bool_: ... |
| | @overload |
| | def all(self, axis: _ShapeLike, out: None = ...) -> matrix[Any, dtype[bool_]]: ... |
| | @overload |
| | def all(self, axis: None | _ShapeLike = ..., out: _NdArraySubClass = ...) -> _NdArraySubClass: ... |
| |
|
| | @overload |
| | def max(self: NDArray[_ScalarType], axis: None = ..., out: None = ...) -> _ScalarType: ... |
| | @overload |
| | def max(self, axis: _ShapeLike, out: None = ...) -> matrix[Any, _DType_co]: ... |
| | @overload |
| | def max(self, axis: None | _ShapeLike = ..., out: _NdArraySubClass = ...) -> _NdArraySubClass: ... |
| |
|
| | @overload |
| | def min(self: NDArray[_ScalarType], axis: None = ..., out: None = ...) -> _ScalarType: ... |
| | @overload |
| | def min(self, axis: _ShapeLike, out: None = ...) -> matrix[Any, _DType_co]: ... |
| | @overload |
| | def min(self, axis: None | _ShapeLike = ..., out: _NdArraySubClass = ...) -> _NdArraySubClass: ... |
| |
|
| | @overload |
| | def argmax(self: NDArray[_ScalarType], axis: None = ..., out: None = ...) -> intp: ... |
| | @overload |
| | def argmax(self, axis: _ShapeLike, out: None = ...) -> matrix[Any, dtype[intp]]: ... |
| | @overload |
| | def argmax(self, axis: None | _ShapeLike = ..., out: _NdArraySubClass = ...) -> _NdArraySubClass: ... |
| |
|
| | @overload |
| | def argmin(self: NDArray[_ScalarType], axis: None = ..., out: None = ...) -> intp: ... |
| | @overload |
| | def argmin(self, axis: _ShapeLike, out: None = ...) -> matrix[Any, dtype[intp]]: ... |
| | @overload |
| | def argmin(self, axis: None | _ShapeLike = ..., out: _NdArraySubClass = ...) -> _NdArraySubClass: ... |
| |
|
| | @overload |
| | def ptp(self: NDArray[_ScalarType], axis: None = ..., out: None = ...) -> _ScalarType: ... |
| | @overload |
| | def ptp(self, axis: _ShapeLike, out: None = ...) -> matrix[Any, _DType_co]: ... |
| | @overload |
| | def ptp(self, axis: None | _ShapeLike = ..., out: _NdArraySubClass = ...) -> _NdArraySubClass: ... |
| |
|
| | def squeeze(self, axis: None | _ShapeLike = ...) -> matrix[Any, _DType_co]: ... |
| | def tolist(self: matrix[Any, dtype[_SupportsItem[_T]]]) -> list[list[_T]]: ... # type: ignore[typevar] |
| | def ravel(self, order: _OrderKACF = ...) -> matrix[Any, _DType_co]: ... |
| | def flatten(self, order: _OrderKACF = ...) -> matrix[Any, _DType_co]: ... |
| |
|
| | @property |
| | def T(self) -> matrix[Any, _DType_co]: ... |
| | @property |
| | def I(self) -> matrix[Any, Any]: ... |
| | @property |
| | def A(self) -> ndarray[_ShapeType, _DType_co]: ... |
| | @property |
| | def A1(self) -> ndarray[Any, _DType_co]: ... |
| | @property |
| | def H(self) -> matrix[Any, _DType_co]: ... |
| | def getT(self) -> matrix[Any, _DType_co]: ... |
| | def getI(self) -> matrix[Any, Any]: ... |
| | def getA(self) -> ndarray[_ShapeType, _DType_co]: ... |
| | def getA1(self) -> ndarray[Any, _DType_co]: ... |
| | def getH(self) -> matrix[Any, _DType_co]: ... |
| |
|
| | _CharType = TypeVar("_CharType", str_, bytes_) |
| | _CharDType = TypeVar("_CharDType", dtype[str_], dtype[bytes_]) |
| | _CharArray = chararray[Any, dtype[_CharType]] |
| |
|
| | class chararray(ndarray[_ShapeType, _CharDType]): |
| | @overload |
| | def __new__( |
| | subtype, |
| | shape: _ShapeLike, |
| | itemsize: SupportsIndex | SupportsInt = ..., |
| | unicode: L[False] = ..., |
| | buffer: _SupportsBuffer = ..., |
| | offset: SupportsIndex = ..., |
| | strides: _ShapeLike = ..., |
| | order: _OrderKACF = ..., |
| | ) -> chararray[Any, dtype[bytes_]]: ... |
| | @overload |
| | def __new__( |
| | subtype, |
| | shape: _ShapeLike, |
| | itemsize: SupportsIndex | SupportsInt = ..., |
| | unicode: L[True] = ..., |
| | buffer: _SupportsBuffer = ..., |
| | offset: SupportsIndex = ..., |
| | strides: _ShapeLike = ..., |
| | order: _OrderKACF = ..., |
| | ) -> chararray[Any, dtype[str_]]: ... |
| |
|
| | def __array_finalize__(self, obj: object) -> None: ... |
| | def __mul__(self, other: _ArrayLikeInt_co) -> chararray[Any, _CharDType]: ... |
| | def __rmul__(self, other: _ArrayLikeInt_co) -> chararray[Any, _CharDType]: ... |
| | def __mod__(self, i: Any) -> chararray[Any, _CharDType]: ... |
| |
|
| | @overload |
| | def __eq__( |
| | self: _CharArray[str_], |
| | other: _ArrayLikeStr_co, |
| | ) -> NDArray[bool_]: ... |
| | @overload |
| | def __eq__( |
| | self: _CharArray[bytes_], |
| | other: _ArrayLikeBytes_co, |
| | ) -> NDArray[bool_]: ... |
| |
|
| | @overload |
| | def __ne__( |
| | self: _CharArray[str_], |
| | other: _ArrayLikeStr_co, |
| | ) -> NDArray[bool_]: ... |
| | @overload |
| | def __ne__( |
| | self: _CharArray[bytes_], |
| | other: _ArrayLikeBytes_co, |
| | ) -> NDArray[bool_]: ... |
| |
|
| | @overload |
| | def __ge__( |
| | self: _CharArray[str_], |
| | other: _ArrayLikeStr_co, |
| | ) -> NDArray[bool_]: ... |
| | @overload |
| | def __ge__( |
| | self: _CharArray[bytes_], |
| | other: _ArrayLikeBytes_co, |
| | ) -> NDArray[bool_]: ... |
| |
|
| | @overload |
| | def __le__( |
| | self: _CharArray[str_], |
| | other: _ArrayLikeStr_co, |
| | ) -> NDArray[bool_]: ... |
| | @overload |
| | def __le__( |
| | self: _CharArray[bytes_], |
| | other: _ArrayLikeBytes_co, |
| | ) -> NDArray[bool_]: ... |
| |
|
| | @overload |
| | def __gt__( |
| | self: _CharArray[str_], |
| | other: _ArrayLikeStr_co, |
| | ) -> NDArray[bool_]: ... |
| | @overload |
| | def __gt__( |
| | self: _CharArray[bytes_], |
| | other: _ArrayLikeBytes_co, |
| | ) -> NDArray[bool_]: ... |
| |
|
| | @overload |
| | def __lt__( |
| | self: _CharArray[str_], |
| | other: _ArrayLikeStr_co, |
| | ) -> NDArray[bool_]: ... |
| | @overload |
| | def __lt__( |
| | self: _CharArray[bytes_], |
| | other: _ArrayLikeBytes_co, |
| | ) -> NDArray[bool_]: ... |
| |
|
| | @overload |
| | def __add__( |
| | self: _CharArray[str_], |
| | other: _ArrayLikeStr_co, |
| | ) -> _CharArray[str_]: ... |
| | @overload |
| | def __add__( |
| | self: _CharArray[bytes_], |
| | other: _ArrayLikeBytes_co, |
| | ) -> _CharArray[bytes_]: ... |
| |
|
| | @overload |
| | def __radd__( |
| | self: _CharArray[str_], |
| | other: _ArrayLikeStr_co, |
| | ) -> _CharArray[str_]: ... |
| | @overload |
| | def __radd__( |
| | self: _CharArray[bytes_], |
| | other: _ArrayLikeBytes_co, |
| | ) -> _CharArray[bytes_]: ... |
| |
|
| | @overload |
| | def center( |
| | self: _CharArray[str_], |
| | width: _ArrayLikeInt_co, |
| | fillchar: _ArrayLikeStr_co = ..., |
| | ) -> _CharArray[str_]: ... |
| | @overload |
| | def center( |
| | self: _CharArray[bytes_], |
| | width: _ArrayLikeInt_co, |
| | fillchar: _ArrayLikeBytes_co = ..., |
| | ) -> _CharArray[bytes_]: ... |
| |
|
| | @overload |
| | def count( |
| | self: _CharArray[str_], |
| | sub: _ArrayLikeStr_co, |
| | start: _ArrayLikeInt_co = ..., |
| | end: None | _ArrayLikeInt_co = ..., |
| | ) -> NDArray[int_]: ... |
| | @overload |
| | def count( |
| | self: _CharArray[bytes_], |
| | sub: _ArrayLikeBytes_co, |
| | start: _ArrayLikeInt_co = ..., |
| | end: None | _ArrayLikeInt_co = ..., |
| | ) -> NDArray[int_]: ... |
| |
|
| | def decode( |
| | self: _CharArray[bytes_], |
| | encoding: None | str = ..., |
| | errors: None | str = ..., |
| | ) -> _CharArray[str_]: ... |
| |
|
| | def encode( |
| | self: _CharArray[str_], |
| | encoding: None | str = ..., |
| | errors: None | str = ..., |
| | ) -> _CharArray[bytes_]: ... |
| |
|
| | @overload |
| | def endswith( |
| | self: _CharArray[str_], |
| | suffix: _ArrayLikeStr_co, |
| | start: _ArrayLikeInt_co = ..., |
| | end: None | _ArrayLikeInt_co = ..., |
| | ) -> NDArray[bool_]: ... |
| | @overload |
| | def endswith( |
| | self: _CharArray[bytes_], |
| | suffix: _ArrayLikeBytes_co, |
| | start: _ArrayLikeInt_co = ..., |
| | end: None | _ArrayLikeInt_co = ..., |
| | ) -> NDArray[bool_]: ... |
| |
|
| | def expandtabs( |
| | self, |
| | tabsize: _ArrayLikeInt_co = ..., |
| | ) -> chararray[Any, _CharDType]: ... |
| |
|
| | @overload |
| | def find( |
| | self: _CharArray[str_], |
| | sub: _ArrayLikeStr_co, |
| | start: _ArrayLikeInt_co = ..., |
| | end: None | _ArrayLikeInt_co = ..., |
| | ) -> NDArray[int_]: ... |
| | @overload |
| | def find( |
| | self: _CharArray[bytes_], |
| | sub: _ArrayLikeBytes_co, |
| | start: _ArrayLikeInt_co = ..., |
| | end: None | _ArrayLikeInt_co = ..., |
| | ) -> NDArray[int_]: ... |
| |
|
| | @overload |
| | def index( |
| | self: _CharArray[str_], |
| | sub: _ArrayLikeStr_co, |
| | start: _ArrayLikeInt_co = ..., |
| | end: None | _ArrayLikeInt_co = ..., |
| | ) -> NDArray[int_]: ... |
| | @overload |
| | def index( |
| | self: _CharArray[bytes_], |
| | sub: _ArrayLikeBytes_co, |
| | start: _ArrayLikeInt_co = ..., |
| | end: None | _ArrayLikeInt_co = ..., |
| | ) -> NDArray[int_]: ... |
| |
|
| | @overload |
| | def join( |
| | self: _CharArray[str_], |
| | seq: _ArrayLikeStr_co, |
| | ) -> _CharArray[str_]: ... |
| | @overload |
| | def join( |
| | self: _CharArray[bytes_], |
| | seq: _ArrayLikeBytes_co, |
| | ) -> _CharArray[bytes_]: ... |
| |
|
| | @overload |
| | def ljust( |
| | self: _CharArray[str_], |
| | width: _ArrayLikeInt_co, |
| | fillchar: _ArrayLikeStr_co = ..., |
| | ) -> _CharArray[str_]: ... |
| | @overload |
| | def ljust( |
| | self: _CharArray[bytes_], |
| | width: _ArrayLikeInt_co, |
| | fillchar: _ArrayLikeBytes_co = ..., |
| | ) -> _CharArray[bytes_]: ... |
| |
|
| | @overload |
| | def lstrip( |
| | self: _CharArray[str_], |
| | chars: None | _ArrayLikeStr_co = ..., |
| | ) -> _CharArray[str_]: ... |
| | @overload |
| | def lstrip( |
| | self: _CharArray[bytes_], |
| | chars: None | _ArrayLikeBytes_co = ..., |
| | ) -> _CharArray[bytes_]: ... |
| |
|
| | @overload |
| | def partition( |
| | self: _CharArray[str_], |
| | sep: _ArrayLikeStr_co, |
| | ) -> _CharArray[str_]: ... |
| | @overload |
| | def partition( |
| | self: _CharArray[bytes_], |
| | sep: _ArrayLikeBytes_co, |
| | ) -> _CharArray[bytes_]: ... |
| |
|
| | @overload |
| | def replace( |
| | self: _CharArray[str_], |
| | old: _ArrayLikeStr_co, |
| | new: _ArrayLikeStr_co, |
| | count: None | _ArrayLikeInt_co = ..., |
| | ) -> _CharArray[str_]: ... |
| | @overload |
| | def replace( |
| | self: _CharArray[bytes_], |
| | old: _ArrayLikeBytes_co, |
| | new: _ArrayLikeBytes_co, |
| | count: None | _ArrayLikeInt_co = ..., |
| | ) -> _CharArray[bytes_]: ... |
| |
|
| | @overload |
| | def rfind( |
| | self: _CharArray[str_], |
| | sub: _ArrayLikeStr_co, |
| | start: _ArrayLikeInt_co = ..., |
| | end: None | _ArrayLikeInt_co = ..., |
| | ) -> NDArray[int_]: ... |
| | @overload |
| | def rfind( |
| | self: _CharArray[bytes_], |
| | sub: _ArrayLikeBytes_co, |
| | start: _ArrayLikeInt_co = ..., |
| | end: None | _ArrayLikeInt_co = ..., |
| | ) -> NDArray[int_]: ... |
| |
|
| | @overload |
| | def rindex( |
| | self: _CharArray[str_], |
| | sub: _ArrayLikeStr_co, |
| | start: _ArrayLikeInt_co = ..., |
| | end: None | _ArrayLikeInt_co = ..., |
| | ) -> NDArray[int_]: ... |
| | @overload |
| | def rindex( |
| | self: _CharArray[bytes_], |
| | sub: _ArrayLikeBytes_co, |
| | start: _ArrayLikeInt_co = ..., |
| | end: None | _ArrayLikeInt_co = ..., |
| | ) -> NDArray[int_]: ... |
| |
|
| | @overload |
| | def rjust( |
| | self: _CharArray[str_], |
| | width: _ArrayLikeInt_co, |
| | fillchar: _ArrayLikeStr_co = ..., |
| | ) -> _CharArray[str_]: ... |
| | @overload |
| | def rjust( |
| | self: _CharArray[bytes_], |
| | width: _ArrayLikeInt_co, |
| | fillchar: _ArrayLikeBytes_co = ..., |
| | ) -> _CharArray[bytes_]: ... |
| |
|
| | @overload |
| | def rpartition( |
| | self: _CharArray[str_], |
| | sep: _ArrayLikeStr_co, |
| | ) -> _CharArray[str_]: ... |
| | @overload |
| | def rpartition( |
| | self: _CharArray[bytes_], |
| | sep: _ArrayLikeBytes_co, |
| | ) -> _CharArray[bytes_]: ... |
| |
|
| | @overload |
| | def rsplit( |
| | self: _CharArray[str_], |
| | sep: None | _ArrayLikeStr_co = ..., |
| | maxsplit: None | _ArrayLikeInt_co = ..., |
| | ) -> NDArray[object_]: ... |
| | @overload |
| | def rsplit( |
| | self: _CharArray[bytes_], |
| | sep: None | _ArrayLikeBytes_co = ..., |
| | maxsplit: None | _ArrayLikeInt_co = ..., |
| | ) -> NDArray[object_]: ... |
| |
|
| | @overload |
| | def rstrip( |
| | self: _CharArray[str_], |
| | chars: None | _ArrayLikeStr_co = ..., |
| | ) -> _CharArray[str_]: ... |
| | @overload |
| | def rstrip( |
| | self: _CharArray[bytes_], |
| | chars: None | _ArrayLikeBytes_co = ..., |
| | ) -> _CharArray[bytes_]: ... |
| |
|
| | @overload |
| | def split( |
| | self: _CharArray[str_], |
| | sep: None | _ArrayLikeStr_co = ..., |
| | maxsplit: None | _ArrayLikeInt_co = ..., |
| | ) -> NDArray[object_]: ... |
| | @overload |
| | def split( |
| | self: _CharArray[bytes_], |
| | sep: None | _ArrayLikeBytes_co = ..., |
| | maxsplit: None | _ArrayLikeInt_co = ..., |
| | ) -> NDArray[object_]: ... |
| |
|
| | def splitlines(self, keepends: None | _ArrayLikeBool_co = ...) -> NDArray[object_]: ... |
| |
|
| | @overload |
| | def startswith( |
| | self: _CharArray[str_], |
| | prefix: _ArrayLikeStr_co, |
| | start: _ArrayLikeInt_co = ..., |
| | end: None | _ArrayLikeInt_co = ..., |
| | ) -> NDArray[bool_]: ... |
| | @overload |
| | def startswith( |
| | self: _CharArray[bytes_], |
| | prefix: _ArrayLikeBytes_co, |
| | start: _ArrayLikeInt_co = ..., |
| | end: None | _ArrayLikeInt_co = ..., |
| | ) -> NDArray[bool_]: ... |
| |
|
| | @overload |
| | def strip( |
| | self: _CharArray[str_], |
| | chars: None | _ArrayLikeStr_co = ..., |
| | ) -> _CharArray[str_]: ... |
| | @overload |
| | def strip( |
| | self: _CharArray[bytes_], |
| | chars: None | _ArrayLikeBytes_co = ..., |
| | ) -> _CharArray[bytes_]: ... |
| |
|
| | @overload |
| | def translate( |
| | self: _CharArray[str_], |
| | table: _ArrayLikeStr_co, |
| | deletechars: None | _ArrayLikeStr_co = ..., |
| | ) -> _CharArray[str_]: ... |
| | @overload |
| | def translate( |
| | self: _CharArray[bytes_], |
| | table: _ArrayLikeBytes_co, |
| | deletechars: None | _ArrayLikeBytes_co = ..., |
| | ) -> _CharArray[bytes_]: ... |
| |
|
| | def zfill(self, width: _ArrayLikeInt_co) -> chararray[Any, _CharDType]: ... |
| | def capitalize(self) -> chararray[_ShapeType, _CharDType]: ... |
| | def title(self) -> chararray[_ShapeType, _CharDType]: ... |
| | def swapcase(self) -> chararray[_ShapeType, _CharDType]: ... |
| | def lower(self) -> chararray[_ShapeType, _CharDType]: ... |
| | def upper(self) -> chararray[_ShapeType, _CharDType]: ... |
| | def isalnum(self) -> ndarray[_ShapeType, dtype[bool_]]: ... |
| | def isalpha(self) -> ndarray[_ShapeType, dtype[bool_]]: ... |
| | def isdigit(self) -> ndarray[_ShapeType, dtype[bool_]]: ... |
| | def islower(self) -> ndarray[_ShapeType, dtype[bool_]]: ... |
| | def isspace(self) -> ndarray[_ShapeType, dtype[bool_]]: ... |
| | def istitle(self) -> ndarray[_ShapeType, dtype[bool_]]: ... |
| | def isupper(self) -> ndarray[_ShapeType, dtype[bool_]]: ... |
| | def isnumeric(self) -> ndarray[_ShapeType, dtype[bool_]]: ... |
| | def isdecimal(self) -> ndarray[_ShapeType, dtype[bool_]]: ... |
| |
|
| | # NOTE: Deprecated |
| | # class MachAr: ... |
| |
|
| | class _SupportsDLPack(Protocol[_T_contra]): |
| | def __dlpack__(self, *, stream: None | _T_contra = ...) -> _PyCapsule: ... |
| |
|
| | def from_dlpack(obj: _SupportsDLPack[None], /) -> NDArray[Any]: ... |
| |
|