Buckets:
MisterAI/LocalAI_Demo_backends / cpu-diffusers.upgrade-tmp /venv /lib /python3.10 /site-packages /numpy /polynomial /chebyshev.pyi
| from collections.abc import Callable, Iterable | |
| from typing import ( | |
| Any, | |
| Concatenate, | |
| Final, | |
| Literal as L, | |
| TypeVar, | |
| overload, | |
| ) | |
| import numpy as np | |
| import numpy.typing as npt | |
| from numpy._typing import _IntLike_co | |
| from ._polybase import ABCPolyBase | |
| from ._polytypes import ( | |
| _SeriesLikeCoef_co, | |
| _Array1, | |
| _Series, | |
| _Array2, | |
| _CoefSeries, | |
| _FuncBinOp, | |
| _FuncCompanion, | |
| _FuncDer, | |
| _FuncFit, | |
| _FuncFromRoots, | |
| _FuncGauss, | |
| _FuncInteg, | |
| _FuncLine, | |
| _FuncPoly2Ortho, | |
| _FuncPow, | |
| _FuncPts, | |
| _FuncRoots, | |
| _FuncUnOp, | |
| _FuncVal, | |
| _FuncVal2D, | |
| _FuncVal3D, | |
| _FuncValFromRoots, | |
| _FuncVander, | |
| _FuncVander2D, | |
| _FuncVander3D, | |
| _FuncWeight, | |
| ) | |
| from .polyutils import trimcoef as chebtrim | |
| __all__ = [ | |
| "chebzero", | |
| "chebone", | |
| "chebx", | |
| "chebdomain", | |
| "chebline", | |
| "chebadd", | |
| "chebsub", | |
| "chebmulx", | |
| "chebmul", | |
| "chebdiv", | |
| "chebpow", | |
| "chebval", | |
| "chebder", | |
| "chebint", | |
| "cheb2poly", | |
| "poly2cheb", | |
| "chebfromroots", | |
| "chebvander", | |
| "chebfit", | |
| "chebtrim", | |
| "chebroots", | |
| "chebpts1", | |
| "chebpts2", | |
| "Chebyshev", | |
| "chebval2d", | |
| "chebval3d", | |
| "chebgrid2d", | |
| "chebgrid3d", | |
| "chebvander2d", | |
| "chebvander3d", | |
| "chebcompanion", | |
| "chebgauss", | |
| "chebweight", | |
| "chebinterpolate", | |
| ] | |
| _SCT = TypeVar("_SCT", bound=np.number[Any] | np.object_) | |
| def _cseries_to_zseries(c: npt.NDArray[_SCT]) -> _Series[_SCT]: ... | |
| def _zseries_to_cseries(zs: npt.NDArray[_SCT]) -> _Series[_SCT]: ... | |
| def _zseries_mul( | |
| z1: npt.NDArray[_SCT], | |
| z2: npt.NDArray[_SCT], | |
| ) -> _Series[_SCT]: ... | |
| def _zseries_div( | |
| z1: npt.NDArray[_SCT], | |
| z2: npt.NDArray[_SCT], | |
| ) -> _Series[_SCT]: ... | |
| def _zseries_der(zs: npt.NDArray[_SCT]) -> _Series[_SCT]: ... | |
| def _zseries_int(zs: npt.NDArray[_SCT]) -> _Series[_SCT]: ... | |
| poly2cheb: _FuncPoly2Ortho[L["poly2cheb"]] | |
| cheb2poly: _FuncUnOp[L["cheb2poly"]] | |
| chebdomain: Final[_Array2[np.float64]] | |
| chebzero: Final[_Array1[np.int_]] | |
| chebone: Final[_Array1[np.int_]] | |
| chebx: Final[_Array2[np.int_]] | |
| chebline: _FuncLine[L["chebline"]] | |
| chebfromroots: _FuncFromRoots[L["chebfromroots"]] | |
| chebadd: _FuncBinOp[L["chebadd"]] | |
| chebsub: _FuncBinOp[L["chebsub"]] | |
| chebmulx: _FuncUnOp[L["chebmulx"]] | |
| chebmul: _FuncBinOp[L["chebmul"]] | |
| chebdiv: _FuncBinOp[L["chebdiv"]] | |
| chebpow: _FuncPow[L["chebpow"]] | |
| chebder: _FuncDer[L["chebder"]] | |
| chebint: _FuncInteg[L["chebint"]] | |
| chebval: _FuncVal[L["chebval"]] | |
| chebval2d: _FuncVal2D[L["chebval2d"]] | |
| chebval3d: _FuncVal3D[L["chebval3d"]] | |
| chebvalfromroots: _FuncValFromRoots[L["chebvalfromroots"]] | |
| chebgrid2d: _FuncVal2D[L["chebgrid2d"]] | |
| chebgrid3d: _FuncVal3D[L["chebgrid3d"]] | |
| chebvander: _FuncVander[L["chebvander"]] | |
| chebvander2d: _FuncVander2D[L["chebvander2d"]] | |
| chebvander3d: _FuncVander3D[L["chebvander3d"]] | |
| chebfit: _FuncFit[L["chebfit"]] | |
| chebcompanion: _FuncCompanion[L["chebcompanion"]] | |
| chebroots: _FuncRoots[L["chebroots"]] | |
| chebgauss: _FuncGauss[L["chebgauss"]] | |
| chebweight: _FuncWeight[L["chebweight"]] | |
| chebpts1: _FuncPts[L["chebpts1"]] | |
| chebpts2: _FuncPts[L["chebpts2"]] | |
| # keep in sync with `Chebyshev.interpolate` | |
| _RT = TypeVar("_RT", bound=np.number[Any] | np.bool | np.object_) | |
| def chebinterpolate( | |
| func: np.ufunc, | |
| deg: _IntLike_co, | |
| args: tuple[()] = ..., | |
| ) -> npt.NDArray[np.float64 | np.complex128 | np.object_]: ... | |
| def chebinterpolate( | |
| func: Callable[[npt.NDArray[np.float64]], _RT], | |
| deg: _IntLike_co, | |
| args: tuple[()] = ..., | |
| ) -> npt.NDArray[_RT]: ... | |
| def chebinterpolate( | |
| func: Callable[Concatenate[npt.NDArray[np.float64], ...], _RT], | |
| deg: _IntLike_co, | |
| args: Iterable[Any], | |
| ) -> npt.NDArray[_RT]: ... | |
| _Self = TypeVar("_Self", bound=object) | |
| class Chebyshev(ABCPolyBase[L["T"]]): | |
| def interpolate( | |
| cls: type[_Self], | |
| /, | |
| func: Callable[[npt.NDArray[np.float64]], _CoefSeries], | |
| deg: _IntLike_co, | |
| domain: None | _SeriesLikeCoef_co = ..., | |
| args: tuple[()] = ..., | |
| ) -> _Self: ... | |
| def interpolate( | |
| cls: type[_Self], | |
| /, | |
| func: Callable[ | |
| Concatenate[npt.NDArray[np.float64], ...], | |
| _CoefSeries, | |
| ], | |
| deg: _IntLike_co, | |
| domain: None | _SeriesLikeCoef_co = ..., | |
| *, | |
| args: Iterable[Any], | |
| ) -> _Self: ... | |
| def interpolate( | |
| cls: type[_Self], | |
| func: Callable[ | |
| Concatenate[npt.NDArray[np.float64], ...], | |
| _CoefSeries, | |
| ], | |
| deg: _IntLike_co, | |
| domain: None | _SeriesLikeCoef_co, | |
| args: Iterable[Any], | |
| /, | |
| ) -> _Self: ... | |
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