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from _typeshed import Incomplete |
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from collections.abc import Sequence |
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from typing import SupportsIndex, TypeAlias, TypeVar, overload |
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import numpy as np |
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from numpy import _CastingKind |
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from numpy._typing import ( |
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ArrayLike, |
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DTypeLike, |
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_AnyShape, |
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_ArrayLike, |
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_DTypeLike, |
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_ShapeLike, |
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) |
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from numpy.lib._function_base_impl import average |
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from numpy.lib._index_tricks_impl import AxisConcatenator |
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from .core import MaskedArray, dot |
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__all__ = [ |
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"apply_along_axis", |
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"apply_over_axes", |
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"atleast_1d", |
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"atleast_2d", |
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"atleast_3d", |
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"average", |
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"clump_masked", |
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"clump_unmasked", |
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"column_stack", |
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"compress_cols", |
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"compress_nd", |
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"compress_rowcols", |
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"compress_rows", |
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"corrcoef", |
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"count_masked", |
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"cov", |
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"diagflat", |
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"dot", |
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"dstack", |
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"ediff1d", |
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"flatnotmasked_contiguous", |
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"flatnotmasked_edges", |
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"hsplit", |
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"hstack", |
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"in1d", |
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"intersect1d", |
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"isin", |
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"mask_cols", |
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"mask_rowcols", |
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"mask_rows", |
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"masked_all", |
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"masked_all_like", |
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"median", |
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"mr_", |
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"ndenumerate", |
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"notmasked_contiguous", |
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"notmasked_edges", |
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"polyfit", |
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"row_stack", |
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"setdiff1d", |
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"setxor1d", |
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"stack", |
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"union1d", |
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"unique", |
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"vander", |
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"vstack", |
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] |
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_ScalarT = TypeVar("_ScalarT", bound=np.generic) |
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_ScalarT1 = TypeVar("_ScalarT1", bound=np.generic) |
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_ScalarT2 = TypeVar("_ScalarT2", bound=np.generic) |
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_MArrayT = TypeVar("_MArrayT", bound=MaskedArray) |
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_MArray: TypeAlias = MaskedArray[_AnyShape, np.dtype[_ScalarT]] |
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@overload |
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def atleast_1d(a0: _ArrayLike[_ScalarT], /) -> _MArray[_ScalarT]: ... |
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@overload |
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def atleast_1d(a0: _ArrayLike[_ScalarT1], a1: _ArrayLike[_ScalarT2], /) -> tuple[_MArray[_ScalarT1], _MArray[_ScalarT2]]: ... |
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@overload |
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def atleast_1d( |
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a0: _ArrayLike[_ScalarT], a1: _ArrayLike[_ScalarT], /, *arys: _ArrayLike[_ScalarT] |
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) -> tuple[_MArray[_ScalarT], ...]: ... |
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@overload |
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def atleast_1d(a0: ArrayLike, /) -> _MArray[Incomplete]: ... |
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@overload |
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def atleast_1d(a0: ArrayLike, a1: ArrayLike, /) -> tuple[_MArray[Incomplete], _MArray[Incomplete]]: ... |
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@overload |
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def atleast_1d(a0: ArrayLike, a1: ArrayLike, /, *ai: ArrayLike) -> tuple[_MArray[Incomplete], ...]: ... |
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@overload |
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def atleast_2d(a0: _ArrayLike[_ScalarT], /) -> _MArray[_ScalarT]: ... |
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@overload |
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def atleast_2d(a0: _ArrayLike[_ScalarT1], a1: _ArrayLike[_ScalarT2], /) -> tuple[_MArray[_ScalarT1], _MArray[_ScalarT2]]: ... |
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@overload |
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def atleast_2d( |
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a0: _ArrayLike[_ScalarT], a1: _ArrayLike[_ScalarT], /, *arys: _ArrayLike[_ScalarT] |
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) -> tuple[_MArray[_ScalarT], ...]: ... |
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@overload |
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def atleast_2d(a0: ArrayLike, /) -> _MArray[Incomplete]: ... |
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@overload |
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def atleast_2d(a0: ArrayLike, a1: ArrayLike, /) -> tuple[_MArray[Incomplete], _MArray[Incomplete]]: ... |
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@overload |
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def atleast_2d(a0: ArrayLike, a1: ArrayLike, /, *ai: ArrayLike) -> tuple[_MArray[Incomplete], ...]: ... |
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@overload |
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def atleast_3d(a0: _ArrayLike[_ScalarT], /) -> _MArray[_ScalarT]: ... |
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@overload |
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def atleast_3d(a0: _ArrayLike[_ScalarT1], a1: _ArrayLike[_ScalarT2], /) -> tuple[_MArray[_ScalarT1], _MArray[_ScalarT2]]: ... |
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@overload |
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def atleast_3d( |
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a0: _ArrayLike[_ScalarT], a1: _ArrayLike[_ScalarT], /, *arys: _ArrayLike[_ScalarT] |
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) -> tuple[_MArray[_ScalarT], ...]: ... |
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@overload |
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def atleast_3d(a0: ArrayLike, /) -> _MArray[Incomplete]: ... |
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@overload |
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def atleast_3d(a0: ArrayLike, a1: ArrayLike, /) -> tuple[_MArray[Incomplete], _MArray[Incomplete]]: ... |
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@overload |
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def atleast_3d(a0: ArrayLike, a1: ArrayLike, /, *ai: ArrayLike) -> tuple[_MArray[Incomplete], ...]: ... |
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@overload |
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def vstack( |
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tup: Sequence[_ArrayLike[_ScalarT]], |
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*, |
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dtype: None = None, |
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casting: _CastingKind = "same_kind" |
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) -> _MArray[_ScalarT]: ... |
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@overload |
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def vstack( |
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tup: Sequence[ArrayLike], |
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*, |
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dtype: _DTypeLike[_ScalarT], |
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casting: _CastingKind = "same_kind" |
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) -> _MArray[_ScalarT]: ... |
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@overload |
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def vstack( |
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tup: Sequence[ArrayLike], |
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*, |
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dtype: DTypeLike | None = None, |
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casting: _CastingKind = "same_kind" |
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) -> _MArray[Incomplete]: ... |
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row_stack = vstack |
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@overload |
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def hstack( |
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tup: Sequence[_ArrayLike[_ScalarT]], |
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*, |
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dtype: None = None, |
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casting: _CastingKind = "same_kind" |
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) -> _MArray[_ScalarT]: ... |
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@overload |
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def hstack( |
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tup: Sequence[ArrayLike], |
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*, |
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dtype: _DTypeLike[_ScalarT], |
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casting: _CastingKind = "same_kind" |
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) -> _MArray[_ScalarT]: ... |
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@overload |
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def hstack( |
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tup: Sequence[ArrayLike], |
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*, |
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dtype: DTypeLike | None = None, |
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casting: _CastingKind = "same_kind" |
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) -> _MArray[Incomplete]: ... |
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@overload |
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def column_stack(tup: Sequence[_ArrayLike[_ScalarT]]) -> _MArray[_ScalarT]: ... |
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@overload |
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def column_stack(tup: Sequence[ArrayLike]) -> _MArray[Incomplete]: ... |
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@overload |
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def dstack(tup: Sequence[_ArrayLike[_ScalarT]]) -> _MArray[_ScalarT]: ... |
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@overload |
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def dstack(tup: Sequence[ArrayLike]) -> _MArray[Incomplete]: ... |
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@overload |
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def stack( |
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arrays: Sequence[_ArrayLike[_ScalarT]], |
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axis: SupportsIndex = 0, |
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out: None = None, |
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*, |
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dtype: None = None, |
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casting: _CastingKind = "same_kind" |
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) -> _MArray[_ScalarT]: ... |
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@overload |
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def stack( |
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arrays: Sequence[ArrayLike], |
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axis: SupportsIndex = 0, |
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out: None = None, |
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*, |
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dtype: _DTypeLike[_ScalarT], |
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casting: _CastingKind = "same_kind" |
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) -> _MArray[_ScalarT]: ... |
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@overload |
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def stack( |
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arrays: Sequence[ArrayLike], |
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axis: SupportsIndex = 0, |
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out: None = None, |
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*, |
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dtype: DTypeLike | None = None, |
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casting: _CastingKind = "same_kind" |
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) -> _MArray[Incomplete]: ... |
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@overload |
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def stack( |
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arrays: Sequence[ArrayLike], |
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axis: SupportsIndex, |
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out: _MArrayT, |
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*, |
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dtype: DTypeLike | None = None, |
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casting: _CastingKind = "same_kind", |
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) -> _MArrayT: ... |
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@overload |
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def stack( |
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arrays: Sequence[ArrayLike], |
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axis: SupportsIndex = 0, |
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*, |
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out: _MArrayT, |
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dtype: DTypeLike | None = None, |
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casting: _CastingKind = "same_kind", |
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) -> _MArrayT: ... |
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@overload |
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def hsplit(ary: _ArrayLike[_ScalarT], indices_or_sections: _ShapeLike) -> list[_MArray[_ScalarT]]: ... |
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@overload |
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def hsplit(ary: ArrayLike, indices_or_sections: _ShapeLike) -> list[_MArray[Incomplete]]: ... |
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@overload |
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def diagflat(v: _ArrayLike[_ScalarT], k: int = 0) -> _MArray[_ScalarT]: ... |
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@overload |
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def diagflat(v: ArrayLike, k: int = 0) -> _MArray[Incomplete]: ... |
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def count_masked(arr, axis=None): ... |
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def masked_all(shape, dtype=float): ... |
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def masked_all_like(arr): ... |
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def apply_along_axis(func1d, axis, arr, *args, **kwargs): ... |
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def apply_over_axes(func, a, axes): ... |
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def median(a, axis=None, out=None, overwrite_input=False, keepdims=False): ... |
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def compress_nd(x, axis=None): ... |
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def compress_rowcols(x, axis=None): ... |
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def compress_rows(a): ... |
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def compress_cols(a): ... |
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def mask_rows(a, axis=...): ... |
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def mask_cols(a, axis=...): ... |
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def ediff1d(arr, to_end=None, to_begin=None): ... |
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def unique(ar1, return_index=False, return_inverse=False): ... |
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def intersect1d(ar1, ar2, assume_unique=False): ... |
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def setxor1d(ar1, ar2, assume_unique=False): ... |
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def in1d(ar1, ar2, assume_unique=False, invert=False): ... |
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def isin(element, test_elements, assume_unique=False, invert=False): ... |
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def union1d(ar1, ar2): ... |
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def setdiff1d(ar1, ar2, assume_unique=False): ... |
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def cov(x, y=None, rowvar=True, bias=False, allow_masked=True, ddof=None): ... |
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def corrcoef(x, y=None, rowvar=True, allow_masked=True): ... |
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class MAxisConcatenator(AxisConcatenator): |
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__slots__ = () |
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@staticmethod |
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def concatenate(arrays: Incomplete, axis: int = 0) -> Incomplete: ... |
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@classmethod |
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def makemat(cls, arr: Incomplete) -> Incomplete: ... |
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class mr_class(MAxisConcatenator): |
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__slots__ = () |
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def __init__(self) -> None: ... |
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mr_: mr_class |
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def ndenumerate(a, compressed=True): ... |
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def flatnotmasked_edges(a): ... |
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def notmasked_edges(a, axis=None): ... |
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def flatnotmasked_contiguous(a): ... |
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def notmasked_contiguous(a, axis=None): ... |
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def clump_unmasked(a): ... |
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def clump_masked(a): ... |
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def vander(x, n=None): ... |
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def polyfit(x, y, deg, rcond=None, full=False, w=None, cov=False): ... |
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def mask_rowcols(a: Incomplete, axis: Incomplete | None = None) -> MaskedArray[Incomplete, np.dtype[Incomplete]]: ... |
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