Buckets:
MisterAI/LocalAI_Demo_backends / cpu-diffusers.upgrade-tmp /venv /lib /python3.10 /site-packages /numpy /ma /extras.pyi
| from _typeshed import Incomplete | |
| import numpy as np | |
| from numpy.lib._function_base_impl import average | |
| from numpy.lib._index_tricks_impl import AxisConcatenator | |
| from .core import MaskedArray, dot | |
| __all__ = [ | |
| "apply_along_axis", | |
| "apply_over_axes", | |
| "atleast_1d", | |
| "atleast_2d", | |
| "atleast_3d", | |
| "average", | |
| "clump_masked", | |
| "clump_unmasked", | |
| "column_stack", | |
| "compress_cols", | |
| "compress_nd", | |
| "compress_rowcols", | |
| "compress_rows", | |
| "corrcoef", | |
| "count_masked", | |
| "cov", | |
| "diagflat", | |
| "dot", | |
| "dstack", | |
| "ediff1d", | |
| "flatnotmasked_contiguous", | |
| "flatnotmasked_edges", | |
| "hsplit", | |
| "hstack", | |
| "in1d", | |
| "intersect1d", | |
| "isin", | |
| "mask_cols", | |
| "mask_rowcols", | |
| "mask_rows", | |
| "masked_all", | |
| "masked_all_like", | |
| "median", | |
| "mr_", | |
| "ndenumerate", | |
| "notmasked_contiguous", | |
| "notmasked_edges", | |
| "polyfit", | |
| "row_stack", | |
| "setdiff1d", | |
| "setxor1d", | |
| "stack", | |
| "union1d", | |
| "unique", | |
| "vander", | |
| "vstack", | |
| ] | |
| def count_masked(arr, axis=...): ... | |
| def masked_all(shape, dtype = ...): ... | |
| def masked_all_like(arr): ... | |
| class _fromnxfunction: | |
| __name__: Incomplete | |
| __doc__: Incomplete | |
| def __init__(self, funcname) -> None: ... | |
| def getdoc(self): ... | |
| def __call__(self, *args, **params): ... | |
| class _fromnxfunction_single(_fromnxfunction): | |
| def __call__(self, x, *args, **params): ... | |
| class _fromnxfunction_seq(_fromnxfunction): | |
| def __call__(self, x, *args, **params): ... | |
| class _fromnxfunction_allargs(_fromnxfunction): | |
| def __call__(self, *args, **params): ... | |
| atleast_1d: _fromnxfunction_allargs | |
| atleast_2d: _fromnxfunction_allargs | |
| atleast_3d: _fromnxfunction_allargs | |
| vstack: _fromnxfunction_seq | |
| row_stack: _fromnxfunction_seq | |
| hstack: _fromnxfunction_seq | |
| column_stack: _fromnxfunction_seq | |
| dstack: _fromnxfunction_seq | |
| stack: _fromnxfunction_seq | |
| hsplit: _fromnxfunction_single | |
| diagflat: _fromnxfunction_single | |
| def apply_along_axis(func1d, axis, arr, *args, **kwargs): ... | |
| def apply_over_axes(func, a, axes): ... | |
| def median(a, axis=..., out=..., overwrite_input=..., keepdims=...): ... | |
| def compress_nd(x, axis=...): ... | |
| def compress_rowcols(x, axis=...): ... | |
| def compress_rows(a): ... | |
| def compress_cols(a): ... | |
| def mask_rows(a, axis = ...): ... | |
| def mask_cols(a, axis = ...): ... | |
| def ediff1d(arr, to_end=..., to_begin=...): ... | |
| def unique(ar1, return_index=..., return_inverse=...): ... | |
| def intersect1d(ar1, ar2, assume_unique=...): ... | |
| def setxor1d(ar1, ar2, assume_unique=...): ... | |
| def in1d(ar1, ar2, assume_unique=..., invert=...): ... | |
| def isin(element, test_elements, assume_unique=..., invert=...): ... | |
| def union1d(ar1, ar2): ... | |
| def setdiff1d(ar1, ar2, assume_unique=...): ... | |
| def cov(x, y=..., rowvar=..., bias=..., allow_masked=..., ddof=...): ... | |
| def corrcoef(x, y=..., rowvar=..., bias = ..., allow_masked=..., ddof = ...): ... | |
| class MAxisConcatenator(AxisConcatenator): | |
| def concatenate(arrays: Incomplete, axis: int = 0) -> Incomplete: ... # type: ignore[override] # pyright: ignore[reportIncompatibleMethodOverride] | |
| def makemat(cls, arr: Incomplete) -> Incomplete: ... # type: ignore[override] # pyright: ignore[reportIncompatibleVariableOverride] | |
| class mr_class(MAxisConcatenator): | |
| def __init__(self) -> None: ... | |
| mr_: mr_class | |
| def ndenumerate(a, compressed=...): ... | |
| def flatnotmasked_edges(a): ... | |
| def notmasked_edges(a, axis=...): ... | |
| def flatnotmasked_contiguous(a): ... | |
| def notmasked_contiguous(a, axis=...): ... | |
| def clump_unmasked(a): ... | |
| def clump_masked(a): ... | |
| def vander(x, n=...): ... | |
| def polyfit(x, y, deg, rcond=..., full=..., w=..., cov=...): ... | |
| # | |
| def mask_rowcols(a: Incomplete, axis: Incomplete | None = None) -> MaskedArray[Incomplete, np.dtype[Incomplete]]: ... | |
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