AIM-PIbd-32-Kurbanova-A-A/aimenv/Lib/site-packages/numpy/__init__.pyi

4096 lines
147 KiB
Python
Raw Permalink Normal View History

2024-10-02 22:15:59 +04:00
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 contextmanager
import numpy as np
from numpy._pytesttester import PytestTester
from numpy._core._internal import _ctypes
from numpy._typing import (
# Arrays
ArrayLike,
NDArray,
_ArrayLike,
_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,
_IntLike_co,
_FloatLike_co,
_TD64Like_co,
_NumberLike_co,
_ScalarLike_co,
# `number` precision
NBitBase,
# NOTE: Do not remove the extended precision bit-types even if seemingly unused;
# they're used by the mypy plugin
_256Bit,
_128Bit,
_96Bit,
_80Bit,
_64Bit,
_32Bit,
_16Bit,
_8Bit,
_NBitByte,
_NBitShort,
_NBitIntC,
_NBitIntP,
_NBitInt,
_NBitLong,
_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,
_LongCodes,
_LongLongCodes,
_UByteCodes,
_UShortCodes,
_UIntCCodes,
_UIntPCodes,
_ULongCodes,
_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,
_ComparisonOpLT,
_ComparisonOpLE,
_ComparisonOpGT,
_ComparisonOpGE,
)
# 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 numpy._array_api_info import __array_namespace_info__ as __array_namespace_info__
from collections.abc import (
Callable,
Iterable,
Iterator,
Mapping,
Sequence,
)
from typing import (
TYPE_CHECKING,
Literal as L,
Any,
Generator,
Generic,
NoReturn,
overload,
SupportsComplex,
SupportsFloat,
SupportsInt,
TypeVar,
Protocol,
SupportsIndex,
Final,
final,
ClassVar,
TypeAlias,
)
if sys.version_info >= (3, 11):
from typing import LiteralString
elif TYPE_CHECKING:
from typing_extensions import LiteralString
else:
LiteralString: TypeAlias = str
# 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,
rec as rec,
char as char,
strings as strings,
)
from numpy._core.records import (
record as record,
recarray as recarray,
)
from numpy._core.defchararray import (
chararray as chararray,
)
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,
matrix_transpose as matrix_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,
cumulative_sum as cumulative_sum,
ptp as ptp,
max as max,
min as min,
amax as amax,
amin as amin,
prod as prod,
cumprod as cumprod,
cumulative_prod as cumulative_prod,
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 (
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,
)
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,
printoptions as printoptions,
)
from numpy._core.einsumfunc import (
einsum as einsum,
einsum_path as einsum_path,
)
from numpy._core.multiarray import (
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,
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,
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,
astype as astype,
)
from numpy._core.numerictypes import (
isdtype as isdtype,
issubdtype as issubdtype,
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,
unstack as unstack,
)
from numpy.lib import (
scimath as emath,
)
from numpy.lib._arraypad_impl import (
pad as pad,
)
from numpy.lib._arraysetops_impl import (
ediff1d as ediff1d,
intersect1d as intersect1d,
isin as isin,
setdiff1d as setdiff1d,
setxor1d as setxor1d,
union1d as union1d,
unique as unique,
unique_all as unique_all,
unique_counts as unique_counts,
unique_inverse as unique_inverse,
unique_values as unique_values,
)
from numpy.lib._function_base_impl 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,
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,
i0 as i0,
meshgrid as meshgrid,
delete as delete,
insert as insert,
append as append,
interp as interp,
quantile as quantile,
trapezoid as trapezoid,
)
from numpy.lib._histograms_impl import (
histogram_bin_edges as histogram_bin_edges,
histogram as histogram,
histogramdd as histogramdd,
)
from numpy.lib._index_tricks_impl 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_impl 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_impl import (
savetxt as savetxt,
loadtxt as loadtxt,
genfromtxt as genfromtxt,
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_impl 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_impl import (
column_stack as column_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,
take_along_axis as take_along_axis,
put_along_axis as put_along_axis,
)
from numpy.lib._stride_tricks_impl import (
broadcast_to as broadcast_to,
broadcast_arrays as broadcast_arrays,
broadcast_shapes as broadcast_shapes,
)
from numpy.lib._twodim_base_impl 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_impl import (
mintypecode as mintypecode,
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_impl import (
fix as fix,
isposinf as isposinf,
isneginf as isneginf,
)
from numpy.lib._utils_impl import (
get_include as get_include,
info as info,
show_runtime as show_runtime,
)
from numpy.matrixlib import (
asmatrix as asmatrix,
bmat as bmat,
)
_AnyStr_contra = TypeVar("_AnyStr_contra", LiteralString, builtins.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]
def __dir__() -> Sequence[str]: ...
__version__: LiteralString
__array_api_version__: LiteralString
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])
_NdArraySubClass_co = TypeVar("_NdArraySubClass_co", bound=NDArray[Any], covariant=True)
_DTypeScalar_co = TypeVar("_DTypeScalar_co", covariant=True, bound=generic)
_SCT = TypeVar("_SCT", bound=generic)
_ByteOrderChar: TypeAlias = L[
"<", # little-endian
">", # big-endian
"=", # native order
"|", # ignore
]
# can be anything, is case-insensitive, and only the first character matters
_ByteOrder: TypeAlias = L[
"S", # swap the current order (default)
"<", "L", "little", # little-endian
">", "B", "big", # big endian
"=", "N", "native", # native order
"|", "I", # ignore
]
_DTypeKind: TypeAlias = L[
"b", # boolean
"i", # signed integer
"u", # unsigned integer
"f", # floating-point
"c", # complex floating-point
"m", # timedelta64
"M", # datetime64
"O", # python object
"S", # byte-string (fixed-width)
"U", # unicode-string (fixed-width)
"V", # void
"T", # unicode-string (variable-width)
]
_DTypeChar: TypeAlias = L[
"?", # bool
"b", # byte
"B", # ubyte
"h", # short
"H", # ushort
"i", # intc
"I", # uintc
"l", # long
"L", # ulong
"q", # longlong
"Q", # ulonglong
"e", # half
"f", # single
"d", # double
"g", # longdouble
"F", # csingle
"D", # cdouble
"G", # clongdouble
"O", # object
"S", # bytes_ (S0)
"a", # bytes_ (deprecated)
"U", # str_
"V", # void
"M", # datetime64
"m", # timedelta64
"c", # bytes_ (S1)
"T", # StringDType
]
_DTypeNum: TypeAlias = L[
0, # bool
1, # byte
2, # ubyte
3, # short
4, # ushort
5, # intc
6, # uintc
7, # long
8, # ulong
9, # longlong
10, # ulonglong
23, # half
11, # single
12, # double
13, # longdouble
14, # csingle
15, # cdouble
16, # clongdouble
17, # object
18, # bytes_
19, # str_
20, # void
21, # datetime64
22, # timedelta64
25, # no type
256, # user-defined
2056, # StringDType
]
_DTypeBuiltinKind: TypeAlias = L[
0, # structured array type, with fields
1, # compiled into numpy
2, # user-defined
]
@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: builtins.bool = ...,
copy: builtins.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
#
# builtins.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[builtins.bool], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[np.bool]: ...
@overload
def __new__(cls, dtype: type[int], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[int_]: ...
@overload
def __new__(cls, dtype: None | type[float], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[float64]: ...
@overload
def __new__(cls, dtype: type[complex], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[complex128]: ...
@overload
def __new__(cls, dtype: type[builtins.str], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[str_]: ...
@overload
def __new__(cls, dtype: type[bytes], align: builtins.bool = ..., copy: builtins.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: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[uint8]: ...
@overload
def __new__(cls, dtype: _UInt16Codes | type[ct.c_uint16], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[uint16]: ...
@overload
def __new__(cls, dtype: _UInt32Codes | type[ct.c_uint32], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[uint32]: ...
@overload
def __new__(cls, dtype: _UInt64Codes | type[ct.c_uint64], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[uint64]: ...
@overload
def __new__(cls, dtype: _UByteCodes | type[ct.c_ubyte], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[ubyte]: ...
@overload
def __new__(cls, dtype: _UShortCodes | type[ct.c_ushort], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[ushort]: ...
@overload
def __new__(cls, dtype: _UIntCCodes | type[ct.c_uint], align: builtins.bool = ..., copy: builtins.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: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[uintp]: ...
@overload
def __new__(cls, dtype: _ULongCodes | type[ct.c_ulong], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[ulong]: ...
@overload
def __new__(cls, dtype: _ULongLongCodes | type[ct.c_ulonglong], align: builtins.bool = ..., copy: builtins.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: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[int8]: ...
@overload
def __new__(cls, dtype: _Int16Codes | type[ct.c_int16], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[int16]: ...
@overload
def __new__(cls, dtype: _Int32Codes | type[ct.c_int32], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[int32]: ...
@overload
def __new__(cls, dtype: _Int64Codes | type[ct.c_int64], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[int64]: ...
@overload
def __new__(cls, dtype: _ByteCodes | type[ct.c_byte], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[byte]: ...
@overload
def __new__(cls, dtype: _ShortCodes | type[ct.c_short], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[short]: ...
@overload
def __new__(cls, dtype: _IntCCodes | type[ct.c_int], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[intc]: ...
@overload
def __new__(cls, dtype: _IntPCodes | type[ct.c_ssize_t], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[intp]: ...
@overload
def __new__(cls, dtype: _LongCodes | type[ct.c_long], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[long]: ...
@overload
def __new__(cls, dtype: _LongLongCodes | type[ct.c_longlong], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[longlong]: ...
# `floating` string-based representations and ctypes
@overload
def __new__(cls, dtype: _Float16Codes, align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[float16]: ...
@overload
def __new__(cls, dtype: _Float32Codes, align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[float32]: ...
@overload
def __new__(cls, dtype: _Float64Codes, align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[float64]: ...
@overload
def __new__(cls, dtype: _HalfCodes, align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[half]: ...
@overload
def __new__(cls, dtype: _SingleCodes | type[ct.c_float], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[single]: ...
@overload
def __new__(cls, dtype: _DoubleCodes | type[ct.c_double], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[double]: ...
@overload
def __new__(cls, dtype: _LongDoubleCodes | type[ct.c_longdouble], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[longdouble]: ...
# `complexfloating` string-based representations
@overload
def __new__(cls, dtype: _Complex64Codes, align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[complex64]: ...
@overload
def __new__(cls, dtype: _Complex128Codes, align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[complex128]: ...
@overload
def __new__(cls, dtype: _CSingleCodes, align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[csingle]: ...
@overload
def __new__(cls, dtype: _CDoubleCodes, align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[cdouble]: ...
@overload
def __new__(cls, dtype: _CLongDoubleCodes, align: builtins.bool = ..., copy: builtins.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: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[np.bool]: ...
@overload
def __new__(cls, dtype: _TD64Codes, align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[timedelta64]: ...
@overload
def __new__(cls, dtype: _DT64Codes, align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[datetime64]: ...
@overload
def __new__(cls, dtype: _StrCodes, align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[str_]: ...
@overload
def __new__(cls, dtype: _BytesCodes | type[ct.c_char], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[bytes_]: ...
@overload
def __new__(cls, dtype: _VoidCodes, align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[void]: ...
@overload
def __new__(cls, dtype: _ObjectCodes | type[ct.py_object[Any]], align: builtins.bool = ..., copy: builtins.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: builtins.bool = ...,
copy: builtins.bool = ...,
metadata: dict[builtins.str, Any] = ...,
) -> dtype[_DTypeScalar_co]: ...
@overload
def __new__(
cls,
dtype: _SupportsDType[dtype[_DTypeScalar_co]],
align: builtins.bool = ...,
copy: builtins.bool = ...,
metadata: dict[builtins.str, Any] = ...,
) -> dtype[_DTypeScalar_co]: ...
# Handle strings that can't be expressed as literals; i.e. s1, s2, ...
@overload
def __new__(
cls,
dtype: builtins.str,
align: builtins.bool = ...,
copy: builtins.bool = ...,
metadata: dict[builtins.str, Any] = ...,
) -> dtype[Any]: ...
# Catchall overload for void-likes
@overload
def __new__(
cls,
dtype: _VoidDTypeLike,
align: builtins.bool = ...,
copy: builtins.bool = ...,
metadata: dict[builtins.str, Any] = ...,
) -> dtype[void]: ...
# Catchall overload for object-likes
@overload
def __new__(
cls,
dtype: type[object],
align: builtins.bool = ...,
copy: builtins.bool = ...,
metadata: dict[builtins.str, Any] = ...,
) -> dtype[object_]: ...
def __class_getitem__(cls, 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, /) -> builtins.bool: ...
def __ge__(self, other: DTypeLike, /) -> builtins.bool: ...
def __lt__(self, other: DTypeLike, /) -> builtins.bool: ...
def __le__(self, other: DTypeLike, /) -> builtins.bool: ...
# Explicitly defined `__eq__` and `__ne__` to get around mypy's
# `strict_equality` option; even though their signatures are
# identical to their `object`-based counterpart
def __eq__(self, other: Any, /) -> builtins.bool: ...
def __ne__(self, other: Any, /) -> builtins.bool: ...
@property
def alignment(self) -> int: ...
@property
def base(self) -> dtype[Any]: ...
@property
def byteorder(self) -> _ByteOrderChar: ...
@property
def char(self) -> _DTypeChar: ...
@property
def descr(self) -> list[tuple[LiteralString, LiteralString] | tuple[LiteralString, LiteralString, _Shape]]: ...
@property
def fields(self,) -> None | MappingProxyType[LiteralString, tuple[dtype[Any], int] | tuple[dtype[Any], int, Any]]: ...
@property
def flags(self) -> int: ...
@property
def hasobject(self) -> builtins.bool: ...
@property
def isbuiltin(self) -> _DTypeBuiltinKind: ...
@property
def isnative(self) -> builtins.bool: ...
@property
def isalignedstruct(self) -> builtins.bool: ...
@property
def itemsize(self) -> int: ...
@property
def kind(self) -> _DTypeKind: ...
@property
def metadata(self) -> None | MappingProxyType[builtins.str, Any]: ...
@property
def name(self) -> LiteralString: ...
@property
def num(self) -> _DTypeNum: ...
@property
def shape(self) -> tuple[()] | _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) -> LiteralString: ...
@property
def type(self) -> type[_DTypeScalar_co]: ...
_ArrayLikeInt: TypeAlias = (
int
| integer[Any]
| Sequence[int | integer[Any]]
| Sequence[Sequence[Any]] # TODO: wait for support for recursive types
| NDArray[Any]
)
_FlatIterSelf = TypeVar("_FlatIterSelf", bound=flatiter[Any])
_FlatShapeType = TypeVar("_FlatShapeType", bound=tuple[int])
@final
class flatiter(Generic[_NdArraySubClass_co]):
__hash__: ClassVar[None]
@property
def base(self) -> _NdArraySubClass_co: ...
@property
def coords(self) -> _Shape: ...
@property
def index(self) -> int: ...
def copy(self) -> _NdArraySubClass_co: ...
def __iter__(self: _FlatIterSelf) -> _FlatIterSelf: ...
def __next__(self: flatiter[NDArray[_ScalarType]]) -> _ScalarType: ...
def __len__(self) -> int: ...
@overload
def __getitem__(
self: flatiter[NDArray[_ScalarType]],
key: int | integer[Any] | tuple[int | integer[Any]],
) -> _ScalarType: ...
@overload
def __getitem__(
self,
key: _ArrayLikeInt | slice | ellipsis | tuple[_ArrayLikeInt | slice | ellipsis],
) -> _NdArraySubClass_co: ...
# 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[_FlatShapeType, _DType]], dtype: None = ..., /) -> ndarray[_FlatShapeType, _DType]: ...
@overload
def __array__(self: flatiter[ndarray[_FlatShapeType, Any]], dtype: _DType, /) -> ndarray[_FlatShapeType, _DType]: ...
@overload
def __array__(self: flatiter[ndarray[Any, _DType]], dtype: None = ..., /) -> ndarray[Any, _DType]: ...
@overload
def __array__(self, dtype: _DType, /) -> ndarray[Any, _DType]: ...
_OrderKACF: TypeAlias = L[None, "K", "A", "C", "F"]
_OrderACF: TypeAlias = L[None, "A", "C", "F"]
_OrderCF: TypeAlias = L[None, "C", "F"]
_ModeKind: TypeAlias = L["raise", "wrap", "clip"]
_PartitionKind: TypeAlias = L["introselect"]
# in practice, only the first case-insensitive character is considered (so e.g.
# "QuantumSort3000" will be interpreted as quicksort).
_SortKind: TypeAlias = L[
"Q", "quick", "quicksort",
"M", "merge", "mergesort",
"H", "heap", "heapsort",
"S", "stable", "stablesort",
]
_SortSide: TypeAlias = L["left", "right"]
_ArraySelf = TypeVar("_ArraySelf", bound=_ArrayOrScalarCommon)
class _ArrayOrScalarCommon:
@property
def T(self: _ArraySelf) -> _ArraySelf: ...
@property
def mT(self: _ArraySelf) -> _ArraySelf: ...
@property
def data(self) -> memoryview: ...
@property
def flags(self) -> flagsobj: ...
@property
def itemsize(self) -> int: ...
@property
def nbytes(self) -> int: ...
@property
def device(self) -> L["cpu"]: ...
def __bool__(self) -> builtins.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 __array_namespace__(self, *, api_version: None | _ArrayAPIVersion = ...) -> Any: ...
def __setstate__(self, state: tuple[
SupportsIndex, # version
_ShapeLike, # Shape
_DType_co, # DType
np.bool, # F-continuous
bytes | list[Any], # Data
], /) -> None: ...
# an `np.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 = ...,
) -> np.bool: ...
@overload
def all(
self,
axis: None | _ShapeLike = ...,
out: None = ...,
keepdims: builtins.bool = ...,
*,
where: _ArrayLikeBool_co = ...,
) -> Any: ...
@overload
def all(
self,
axis: None | _ShapeLike = ...,
out: _NdArraySubClass = ...,
keepdims: builtins.bool = ...,
*,
where: _ArrayLikeBool_co = ...,
) -> _NdArraySubClass: ...
@overload
def any(
self,
axis: None = ...,
out: None = ...,
keepdims: L[False] = ...,
*,
where: _ArrayLikeBool_co = ...,
) -> np.bool: ...
@overload
def any(
self,
axis: None | _ShapeLike = ...,
out: None = ...,
keepdims: builtins.bool = ...,
*,
where: _ArrayLikeBool_co = ...,
) -> Any: ...
@overload
def any(
self,
axis: None | _ShapeLike = ...,
out: _NdArraySubClass = ...,
keepdims: builtins.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: builtins.bool = ...,
) -> Any: ...
@overload
def argmax(
self,
axis: None | SupportsIndex = ...,
out: _NdArraySubClass = ...,
*,
keepdims: builtins.bool = ...,
) -> _NdArraySubClass: ...
@overload
def argmin(
self,
axis: None = ...,
out: None = ...,
*,
keepdims: L[False] = ...,
) -> intp: ...
@overload
def argmin(
self,
axis: SupportsIndex = ...,
out: None = ...,
*,
keepdims: builtins.bool = ...,
) -> Any: ...
@overload
def argmin(
self,
axis: None | SupportsIndex = ...,
out: _NdArraySubClass = ...,
*,
keepdims: builtins.bool = ...,
) -> _NdArraySubClass: ...
def argsort(
self,
axis: None | SupportsIndex = ...,
kind: None | _SortKind = ...,
order: None | str | Sequence[str] = ...,
*,
stable: None | bool = ...,
) -> NDArray[Any]: ...
@overload
def choose(
self,
choices: ArrayLike,
out: None = ...,
mode: _ModeKind = ...,
) -> NDArray[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]: ...
@overload
def clip(
self,
min: None = ...,
max: ArrayLike = ...,
out: None = ...,
**kwargs: Any,
) -> NDArray[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]: ...
@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]: ...
@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]: ...
@overload
def cumsum(
self,
axis: None | SupportsIndex = ...,
dtype: DTypeLike = ...,
out: _NdArraySubClass = ...,
) -> _NdArraySubClass: ...
@overload
def max(
self,
axis: None | _ShapeLike = ...,
out: None = ...,
keepdims: builtins.bool = ...,
initial: _NumberLike_co = ...,
where: _ArrayLikeBool_co = ...,
) -> Any: ...
@overload
def max(
self,
axis: None | _ShapeLike = ...,
out: _NdArraySubClass = ...,
keepdims: builtins.bool = ...,
initial: _NumberLike_co = ...,
where: _ArrayLikeBool_co = ...,
) -> _NdArraySubClass: ...
@overload
def mean(
self,
axis: None | _ShapeLike = ...,
dtype: DTypeLike = ...,
out: None = ...,
keepdims: builtins.bool = ...,
*,
where: _ArrayLikeBool_co = ...,
) -> Any: ...
@overload
def mean(
self,
axis: None | _ShapeLike = ...,
dtype: DTypeLike = ...,
out: _NdArraySubClass = ...,
keepdims: builtins.bool = ...,
*,
where: _ArrayLikeBool_co = ...,
) -> _NdArraySubClass: ...
@overload
def min(
self,
axis: None | _ShapeLike = ...,
out: None = ...,
keepdims: builtins.bool = ...,
initial: _NumberLike_co = ...,
where: _ArrayLikeBool_co = ...,
) -> Any: ...
@overload
def min(
self,
axis: None | _ShapeLike = ...,
out: _NdArraySubClass = ...,
keepdims: builtins.bool = ...,
initial: _NumberLike_co = ...,
where: _ArrayLikeBool_co = ...,
) -> _NdArraySubClass: ...
@overload
def prod(
self,
axis: None | _ShapeLike = ...,
dtype: DTypeLike = ...,
out: None = ...,
keepdims: builtins.bool = ...,
initial: _NumberLike_co = ...,
where: _ArrayLikeBool_co = ...,
) -> Any: ...
@overload
def prod(
self,
axis: None | _ShapeLike = ...,
dtype: DTypeLike = ...,
out: _NdArraySubClass = ...,
keepdims: builtins.bool = ...,
initial: _NumberLike_co = ...,
where: _ArrayLikeBool_co = ...,
) -> _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: builtins.bool = ...,
*,
where: _ArrayLikeBool_co = ...,
) -> Any: ...
@overload
def std(
self,
axis: None | _ShapeLike = ...,
dtype: DTypeLike = ...,
out: _NdArraySubClass = ...,
ddof: float = ...,
keepdims: builtins.bool = ...,
*,
where: _ArrayLikeBool_co = ...,
) -> _NdArraySubClass: ...
@overload
def sum(
self,
axis: None | _ShapeLike = ...,
dtype: DTypeLike = ...,
out: None = ...,
keepdims: builtins.bool = ...,
initial: _NumberLike_co = ...,
where: _ArrayLikeBool_co = ...,
) -> Any: ...
@overload
def sum(
self,
axis: None | _ShapeLike = ...,
dtype: DTypeLike = ...,
out: _NdArraySubClass = ...,
keepdims: builtins.bool = ...,
initial: _NumberLike_co = ...,
where: _ArrayLikeBool_co = ...,
) -> _NdArraySubClass: ...
@overload
def var(
self,
axis: None | _ShapeLike = ...,
dtype: DTypeLike = ...,
out: None = ...,
ddof: float = ...,
keepdims: builtins.bool = ...,
*,
where: _ArrayLikeBool_co = ...,
) -> Any: ...
@overload
def var(
self,
axis: None | _ShapeLike = ...,
dtype: DTypeLike = ...,
out: _NdArraySubClass = ...,
ddof: float = ...,
keepdims: builtins.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])
_ShapeType_co = TypeVar("_ShapeType_co", covariant=True, bound=tuple[int, ...])
_ShapeType2 = TypeVar("_ShapeType2", bound=tuple[int, ...])
_Shape2DType_co = TypeVar("_Shape2DType_co", covariant=True, bound=tuple[int, int])
_NumberType = TypeVar("_NumberType", bound=number[Any])
if sys.version_info >= (3, 12):
from collections.abc import Buffer as _SupportsBuffer
else:
_SupportsBuffer: TypeAlias = (
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: TypeAlias = tuple[_T, _T]
_CastingKind: TypeAlias = L["no", "equiv", "safe", "same_kind", "unsafe"]
_ArrayUInt_co: TypeAlias = NDArray[np.bool | unsignedinteger[Any]]
_ArrayInt_co: TypeAlias = NDArray[np.bool | integer[Any]]
_ArrayFloat_co: TypeAlias = NDArray[np.bool | integer[Any] | floating[Any]]
_ArrayComplex_co: TypeAlias = NDArray[np.bool | integer[Any] | floating[Any] | complexfloating[Any, Any]]
_ArrayNumber_co: TypeAlias = NDArray[np.bool | number[Any]]
_ArrayTD64_co: TypeAlias = NDArray[np.bool | integer[Any] | timedelta64]
# Introduce an alias for `dtype` to avoid naming conflicts.
_dtype: TypeAlias = dtype[_ScalarType]
if sys.version_info >= (3, 13):
from types import CapsuleType as _PyCapsule
else:
_PyCapsule: TypeAlias = Any
_ArrayAPIVersion: TypeAlias = L["2021.12", "2022.12", "2023.12"]
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_co, _DType_co]):
__hash__: ClassVar[None]
@property
def base(self) -> None | NDArray[Any]: ...
@property
def ndim(self) -> int: ...
@property
def size(self) -> int: ...
@property
def real(
self: ndarray[_ShapeType_co, dtype[_SupportsReal[_ScalarType]]], # type: ignore[type-var]
) -> ndarray[_ShapeType_co, _dtype[_ScalarType]]: ...
@real.setter
def real(self, value: ArrayLike) -> None: ...
@property
def imag(
self: ndarray[_ShapeType_co, dtype[_SupportsImag[_ScalarType]]], # type: ignore[type-var]
) -> ndarray[_ShapeType_co, _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__(cls, item: Any, /) -> GenericAlias: ...
@overload
def __array__(
self, dtype: None = ..., /, *, copy: None | bool = ...
) -> ndarray[_ShapeType_co, _DType_co]: ...
@overload
def __array__(
self, dtype: _DType, /, *, copy: None | bool = ...
) -> ndarray[_ShapeType_co, _DType]: ...
def __array_ufunc__(
self,
ufunc: ufunc,
method: L["__call__", "reduce", "reduceat", "accumulate", "outer", "at"],
*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] = ...,
return_scalar: builtins.bool = ...,
/,
) -> ndarray[_ShapeType2, _DType]: ...
@overload
def __getitem__(self, key: (
NDArray[integer[Any]]
| NDArray[np.bool]
| tuple[NDArray[integer[Any]] | NDArray[np.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_co, _dtype[void]]: ...
@property
def ctypes(self) -> _ctypes[int]: ...
@property
def shape(self) -> _ShapeType_co: ...
@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: builtins.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 resize(self, new_shape: _ShapeLike, /, *, refcheck: builtins.bool = ...) -> None: ...
@overload
def resize(self, *new_shape: SupportsIndex, refcheck: builtins.bool = ...) -> None: ...
def setflags(
self, write: builtins.bool = ..., align: builtins.bool = ..., uic: builtins.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[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]: ...
@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[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[intp]: ...
def setfield(
self,
val: ArrayLike,
dtype: DTypeLike,
offset: SupportsIndex = ...,
) -> None: ...
def sort(
self,
axis: SupportsIndex = ...,
kind: None | _SortKind = ...,
order: None | str | Sequence[str] = ...,
*,
stable: None | bool = ...,
) -> 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[_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]: ...
# TODO: use `tuple[int]` as shape type once covariant (#26081)
def flatten(
self,
order: _OrderKACF = ...,
) -> ndarray[Any, _DType_co]: ...
# TODO: use `tuple[int]` as shape type once covariant (#26081)
def ravel(
self,
order: _OrderKACF = ...,
) -> ndarray[Any, _DType_co]: ...
@overload
def reshape(
self,
shape: _ShapeLike,
/,
*,
order: _OrderACF = ...,
copy: None | bool = ...,
) -> ndarray[Any, _DType_co]: ...
@overload
def reshape(
self,
*shape: SupportsIndex,
order: _OrderACF = ...,
copy: None | bool = ...,
) -> ndarray[Any, _DType_co]: ...
@overload
def astype(
self,
dtype: _DTypeLike[_ScalarType],
order: _OrderKACF = ...,
casting: _CastingKind = ...,
subok: builtins.bool = ...,
copy: builtins.bool | _CopyMode = ...,
) -> NDArray[_ScalarType]: ...
@overload
def astype(
self,
dtype: DTypeLike,
order: _OrderKACF = ...,
casting: _CastingKind = ...,
subok: builtins.bool = ...,
copy: builtins.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[SupportsInt], # type: ignore[type-var]
) -> int: ...
def __float__(
self: NDArray[SupportsFloat], # type: ignore[type-var]
) -> float: ...
def __complex__(
self: NDArray[SupportsComplex], # type: ignore[type-var]
) -> complex: ...
def __index__(
self: NDArray[SupportsIndex], # type: ignore[type-var]
) -> int: ...
def __len__(self) -> int: ...
def __setitem__(self, key, value): ...
def __iter__(self) -> Any: ...
def __contains__(self, key) -> builtins.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[np.bool]: ...
@overload
def __lt__(self: _ArrayTD64_co, other: _ArrayLikeTD64_co, /) -> NDArray[np.bool]: ...
@overload
def __lt__(self: NDArray[datetime64], other: _ArrayLikeDT64_co, /) -> NDArray[np.bool]: ...
@overload
def __lt__(self: NDArray[object_], other: Any, /) -> NDArray[np.bool]: ...
@overload
def __lt__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> NDArray[np.bool]: ...
@overload
def __le__(self: _ArrayNumber_co, other: _ArrayLikeNumber_co, /) -> NDArray[np.bool]: ...
@overload
def __le__(self: _ArrayTD64_co, other: _ArrayLikeTD64_co, /) -> NDArray[np.bool]: ...
@overload
def __le__(self: NDArray[datetime64], other: _ArrayLikeDT64_co, /) -> NDArray[np.bool]: ...
@overload
def __le__(self: NDArray[object_], other: Any, /) -> NDArray[np.bool]: ...
@overload
def __le__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> NDArray[np.bool]: ...
@overload
def __gt__(self: _ArrayNumber_co, other: _ArrayLikeNumber_co, /) -> NDArray[np.bool]: ...
@overload
def __gt__(self: _ArrayTD64_co, other: _ArrayLikeTD64_co, /) -> NDArray[np.bool]: ...
@overload
def __gt__(self: NDArray[datetime64], other: _ArrayLikeDT64_co, /) -> NDArray[np.bool]: ...
@overload
def __gt__(self: NDArray[object_], other: Any, /) -> NDArray[np.bool]: ...
@overload
def __gt__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> NDArray[np.bool]: ...
@overload
def __ge__(self: _ArrayNumber_co, other: _ArrayLikeNumber_co, /) -> NDArray[np.bool]: ...
@overload
def __ge__(self: _ArrayTD64_co, other: _ArrayLikeTD64_co, /) -> NDArray[np.bool]: ...
@overload
def __ge__(self: NDArray[datetime64], other: _ArrayLikeDT64_co, /) -> NDArray[np.bool]: ...
@overload
def __ge__(self: NDArray[object_], other: Any, /) -> NDArray[np.bool]: ...
@overload
def __ge__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> NDArray[np.bool]: ...
# Unary ops
@overload
def __abs__(self: NDArray[_UnknownType]) -> NDArray[Any]: ...
@overload
def __abs__(self: NDArray[np.bool]) -> NDArray[np.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[_UnknownType]) -> NDArray[Any]: ...
@overload
def __invert__(self: NDArray[np.bool]) -> NDArray[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __matmul__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __rmatmul__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __mod__(self: NDArray[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __rmod__(self: NDArray[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> _2Tuple[NDArray[Any]]: ...
@overload
def __divmod__(self: NDArray[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> _2Tuple[NDArray[Any]]: ...
@overload
def __rdivmod__(self: NDArray[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __add__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __radd__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.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[np.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[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __mul__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __rmul__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __floordiv__(self: NDArray[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __rfloordiv__(self: NDArray[np.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[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __pow__(self: NDArray[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __rpow__(self: NDArray[np.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: NDArray[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[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: NDArray[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[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[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __lshift__(self: NDArray[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __rlshift__(self: NDArray[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __rshift__(self: NDArray[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __rrshift__(self: NDArray[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __and__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __rand__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __xor__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __rxor__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __or__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __ror__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __iadd__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __imul__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __iand__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __ixor__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __ior__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.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[_UnknownType], other: _ArrayLikeUnknown, /) -> NDArray[Any]: ...
@overload
def __imatmul__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.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: int | Any | None = ...,
max_version: tuple[int, int] | None = ...,
dl_device: tuple[int, L[0]] | None = ...,
copy: bool | None = ...,
) -> _PyCapsule: ...
def __dlpack_device__(self) -> tuple[int, L[0]]: ...
@overload
def to_device(self: NDArray[_SCT], device: L["cpu"], /, *, stream: None | int | Any = ...) -> NDArray[_SCT]: ...
@overload
def to_device(self: NDArray[Any], device: L["cpu"], /, *, stream: None | int | Any = ...) -> NDArray[Any]: ...
def bitwise_count(
self,
out: None | NDArray[Any] = ...,
*,
where: _ArrayLikeBool_co = ...,
casting: _CastingKind = ...,
order: _OrderKACF = ...,
dtype: DTypeLike = ...,
subok: builtins.bool = ...,
) -> NDArray[Any]: ...
# 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: ...
# TODO: use `tuple[()]` as shape type once covariant (#26081)
@overload
def __array__(self: _ScalarType, dtype: None = ..., /) -> NDArray[_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[_ScalarType]]: ...
if sys.version_info >= (3, 12):
def __buffer__(self, flags: int, /) -> memoryview: ...
def to_device(self: _ScalarType, device: L["cpu"], /, *, stream: None | int | Any = ...) -> _ScalarType: ...
@overload
def astype(
self,
dtype: _DTypeLike[_ScalarType],
order: _OrderKACF = ...,
casting: _CastingKind = ...,
subok: builtins.bool = ...,
copy: builtins.bool | _CopyMode = ...,
) -> _ScalarType: ...
@overload
def astype(
self,
dtype: DTypeLike,
order: _OrderKACF = ...,
casting: _CastingKind = ...,
subok: builtins.bool = ...,
copy: builtins.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]] = ...,
) -> _ScalarType: ...
@overload
def view(
self,
dtype: _DTypeLike[_ScalarType],
type: type[NDArray[Any]] = ...,
) -> _ScalarType: ...
@overload
def view(
self,
dtype: DTypeLike,
type: type[NDArray[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[_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[_ScalarType]: ...
def flatten(
self: _ScalarType,
order: _OrderKACF = ...,
) -> NDArray[_ScalarType]: ...
def ravel(
self: _ScalarType,
order: _OrderKACF = ...,
) -> NDArray[_ScalarType]: ...
@overload
def reshape(
self: _ScalarType, shape: _ShapeLike, /, *, order: _OrderACF = ...
) -> NDArray[_ScalarType]: ...
@overload
def reshape(
self: _ScalarType, *shape: SupportsIndex, order: _OrderACF = ...
) -> NDArray[_ScalarType]: ...
def bitwise_count(
self,
out: None | NDArray[Any] = ...,
*,
where: _ArrayLikeBool_co = ...,
casting: _CastingKind = ...,
order: _OrderKACF = ...,
dtype: DTypeLike = ...,
subok: builtins.bool = ...,
) -> Any: ...
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__(cls, 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__: _ComparisonOpLT[_NumberLike_co, _ArrayLikeNumber_co]
__le__: _ComparisonOpLE[_NumberLike_co, _ArrayLikeNumber_co]
__gt__: _ComparisonOpGT[_NumberLike_co, _ArrayLikeNumber_co]
__ge__: _ComparisonOpGE[_NumberLike_co, _ArrayLikeNumber_co]
class bool(generic):
def __init__(self, value: object = ..., /) -> None: ...
def item(
self, args: L[0] | tuple[()] | tuple[L[0]] = ..., /,
) -> builtins.bool: ...
def tolist(self) -> builtins.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[np.bool]
__radd__: _BoolOp[np.bool]
__sub__: _BoolSub
__rsub__: _BoolSub
__mul__: _BoolOp[np.bool]
__rmul__: _BoolOp[np.bool]
__floordiv__: _BoolOp[int8]
__rfloordiv__: _BoolOp[int8]
__pow__: _BoolOp[int8]
__rpow__: _BoolOp[int8]
__truediv__: _BoolTrueDiv
__rtruediv__: _BoolTrueDiv
def __invert__(self) -> np.bool: ...
__lshift__: _BoolBitOp[int8]
__rlshift__: _BoolBitOp[int8]
__rshift__: _BoolBitOp[int8]
__rrshift__: _BoolBitOp[int8]
__and__: _BoolBitOp[np.bool]
__rand__: _BoolBitOp[np.bool]
__xor__: _BoolBitOp[np.bool]
__rxor__: _BoolBitOp[np.bool]
__or__: _BoolBitOp[np.bool]
__ror__: _BoolBitOp[np.bool]
__mod__: _BoolMod
__rmod__: _BoolMod
__divmod__: _BoolDivMod
__rdivmod__: _BoolDivMod
__lt__: _ComparisonOpLT[_NumberLike_co, _ArrayLikeNumber_co]
__le__: _ComparisonOpLE[_NumberLike_co, _ArrayLikeNumber_co]
__gt__: _ComparisonOpGT[_NumberLike_co, _ArrayLikeNumber_co]
__ge__: _ComparisonOpGE[_NumberLike_co, _ArrayLikeNumber_co]
bool_: TypeAlias = bool
@final
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__: _ComparisonOpLT[datetime64, _ArrayLikeDT64_co]
__le__: _ComparisonOpLE[datetime64, _ArrayLikeDT64_co]
__gt__: _ComparisonOpGT[datetime64, _ArrayLikeDT64_co]
__ge__: _ComparisonOpGE[datetime64, _ArrayLikeDT64_co]
_IntValue: TypeAlias = SupportsInt | _CharLike_co | SupportsIndex
_FloatValue: TypeAlias = None | _CharLike_co | SupportsFloat | SupportsIndex
_ComplexValue: TypeAlias = (
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_ = intp
long = signedinteger[_NBitLong]
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__: _ComparisonOpLT[_TD64Like_co, _ArrayLikeTD64_co]
__le__: _ComparisonOpLE[_TD64Like_co, _ArrayLikeTD64_co]
__gt__: _ComparisonOpGT[_TD64Like_co, _ArrayLikeTD64_co]
__ge__: _ComparisonOpGE[_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: TypeAlias = unsignedinteger[_8Bit]
uint16: TypeAlias = unsignedinteger[_16Bit]
uint32: TypeAlias = unsignedinteger[_32Bit]
uint64: TypeAlias = unsignedinteger[_64Bit]
ubyte: TypeAlias = unsignedinteger[_NBitByte]
ushort: TypeAlias = unsignedinteger[_NBitShort]
uintc: TypeAlias = unsignedinteger[_NBitIntC]
uintp: TypeAlias = unsignedinteger[_NBitIntP]
uint: TypeAlias = uintp
ulong: TypeAlias = unsignedinteger[_NBitLong]
ulonglong: TypeAlias = 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) -> builtins.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: TypeAlias = floating[_16Bit]
float32: TypeAlias = floating[_32Bit]
float64: TypeAlias = floating[_64Bit]
half: TypeAlias = floating[_NBitHalf]
single: TypeAlias = floating[_NBitSingle]
double: TypeAlias = floating[_NBitDouble]
longdouble: TypeAlias = 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: TypeAlias = complexfloating[_32Bit, _32Bit]
complex128: TypeAlias = complexfloating[_64Bit, _64Bit]
csingle: TypeAlias = complexfloating[_NBitSingle, _NBitSingle]
cdouble: TypeAlias = complexfloating[_NBitDouble, _NBitDouble]
clongdouble: TypeAlias = 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: ...
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: ...
#
# Constants
#
e: Final[float]
euler_gamma: Final[float]
inf: Final[float]
nan: Final[float]
pi: Final[float]
little_endian: Final[builtins.bool]
True_: Final[np.bool]
False_: Final[np.bool]
newaxis: None
# See `numpy._typing._ufunc` for more concrete nin-/nout-specific stubs
@final
class ufunc:
@property
def __name__(self) -> LiteralString: ...
@property
def __doc__(self) -> str: ...
@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[LiteralString]: ...
# 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 | LiteralString: ...
def __call__(self, *args: Any, **kwargs: Any) -> Any: ...
# 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.
def reduce(self, /, *args: Any, **kwargs: Any) -> NoReturn | Any: ...
def accumulate(self, /, *args: Any, **kwargs: Any) -> NoReturn | NDArray[Any]: ...
def reduceat(self, /, *args: Any, **kwargs: Any) -> NoReturn | NDArray[Any]: ...
def outer(self, *args: Any, **kwargs: Any) -> NoReturn | Any: ...
# Similarly at won't be defined for ufuncs that return multiple
# outputs, so we can't type it very precisely.
def at(self, /, *args: Any, **kwargs: Any) -> NoReturn | None: ...
# 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_count: _UFunc_Nin1_Nout1[L['bitwise_count'], L[11], None]
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, L["(n?,k),(k,m?)->(n?,m?)"]]
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]
vecdot: _GUFunc_Nin2_Nout1[L['vecdot'], L[19], None, L["(n),(n)->()"]]
abs = absolute
acos = arccos
acosh = arccosh
asin = arcsin
asinh = arcsinh
atan = arctan
atanh = arctanh
atan2 = arctan2
concat = concatenate
bitwise_left_shift = left_shift
bitwise_invert = invert
bitwise_right_shift = right_shift
permute_dims = transpose
pow = power
class _CopyMode(enum.Enum):
ALWAYS: L[True]
IF_NEEDED: L[False]
NEVER: L[2]
_CallType = TypeVar("_CallType", bound=Callable[..., Any])
class errstate:
def __init__(
self,
*,
call: _ErrFunc | _SupportsWrite[str] = ...,
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: ...
def __call__(self, func: _CallType) -> _CallType: ...
@contextmanager
def _no_nep50_warning() -> Generator[None, None, None]: ...
def _get_promotion_state() -> str: ...
def _set_promotion_state(state: str, /) -> None: ...
_ScalarType_co = TypeVar("_ScalarType_co", bound=generic, covariant=True)
class ndenumerate(Generic[_ScalarType_co]):
@property
def iter(self) -> flatiter[NDArray[_ScalarType_co]]: ...
@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: builtins.bool | _NestedSequence[builtins.bool]) -> ndenumerate[np.bool]: ...
@overload
def __new__(cls, arr: int | _NestedSequence[int]) -> ndenumerate[int_]: ...
@overload
def __new__(cls, arr: float | _NestedSequence[float]) -> ndenumerate[float64]: ...
@overload
def __new__(cls, arr: complex | _NestedSequence[complex]) -> ndenumerate[complex128]: ...
@overload
def __new__(cls, arr: object) -> ndenumerate[object_]: ...
# The first overload is a (semi-)workaround for a mypy bug (tested with v1.10 and v1.11)
@overload
def __next__(
self: ndenumerate[np.bool | datetime64 | timedelta64 | number[Any] | flexible],
/,
) -> tuple[_Shape, _ScalarType_co]: ...
@overload
def __next__(self: ndenumerate[object_], /) -> tuple[_Shape, Any]: ...
@overload
def __next__(self, /) -> tuple[_Shape, _ScalarType_co]: ...
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: ...
# 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[np.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[float64]: ...
@overload
def __new__(
cls, dtype: str
) -> finfo[floating[Any]]: ...
class iinfo(Generic[_IntType]):
dtype: dtype[_IntType]
kind: LiteralString
bits: int
key: LiteralString
@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]: ...
_NDIterFlagsKind: TypeAlias = 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: TypeAlias = 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) -> builtins.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) -> builtins.bool: ...
@property
def has_delayed_bufalloc(self) -> builtins.bool: ...
@property
def has_index(self) -> builtins.bool: ...
@property
def has_multi_index(self) -> builtins.bool: ...
@property
def index(self) -> int: ...
@property
def iterationneedsapi(self) -> builtins.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: TypeAlias = L[
"readonly", "r",
"copyonwrite", "c",
"readwrite", "r+",
"write", "w+",
]
class memmap(ndarray[_ShapeType_co, _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_co, _DType_co],
context: None | tuple[ufunc, tuple[Any, ...], int] = ...,
return_scalar: builtins.bool = ...,
) -> 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: builtins.bool
signature: None | LiteralString
otypes: None | LiteralString
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: builtins.bool = ...,
signature: None | str = ...,
) -> None: ...
def __call__(self, *args: Any, **kwargs: Any) -> Any: ...
class poly1d:
@property
def variable(self) -> LiteralString: ...
@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
# TODO: use `tuple[int]` as shape type once covariant (#26081)
@overload
def __array__(self, t: None = ..., copy: None | bool = ...) -> NDArray[Any]: ...
@overload
def __array__(self, t: _DType, copy: None | bool = ...) -> 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: builtins.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[_Shape2DType_co, _DType_co]):
__array_priority__: ClassVar[float]
def __new__(
subtype,
data: ArrayLike,
dtype: DTypeLike = ...,
copy: builtins.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[_Shape2DType_co, dtype[void]]: ...
def __mul__(self, other: ArrayLike, /) -> matrix[Any, Any]: ...
def __rmul__(self, other: ArrayLike, /) -> matrix[Any, Any]: ...
def __imul__(self, other: ArrayLike, /) -> matrix[_Shape2DType_co, _DType_co]: ...
def __pow__(self, other: ArrayLike, /) -> matrix[Any, Any]: ...
def __ipow__(self, other: ArrayLike, /) -> matrix[_Shape2DType_co, _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 = ...) -> np.bool: ...
@overload
def any(self, axis: _ShapeLike, out: None = ...) -> matrix[Any, dtype[np.bool]]: ...
@overload
def any(self, axis: None | _ShapeLike = ..., out: _NdArraySubClass = ...) -> _NdArraySubClass: ...
@overload
def all(self, axis: None = ..., out: None = ...) -> np.bool: ...
@overload
def all(self, axis: _ShapeLike, out: None = ...) -> matrix[Any, dtype[np.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[_Shape2DType_co, _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[_Shape2DType_co, _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_])
# NOTE: Deprecated
# class MachAr: ...
class _SupportsDLPack(Protocol[_T_contra]):
def __dlpack__(self, *, stream: None | _T_contra = ...) -> _PyCapsule: ...
def from_dlpack(
obj: _SupportsDLPack[None],
/,
*,
device: L["cpu"] | None = ...,
copy: bool | None = ...,
) -> NDArray[Any]: ...