File manager - Edit - /usr/local/lib/python3.9/dist-packages/numpy/typing/tests/data/pass/array_like.py
Back
from __future__ import annotations from typing import Any import numpy as np from numpy._typing import NDArray, ArrayLike, _SupportsArray x1: ArrayLike = True x2: ArrayLike = 5 x3: ArrayLike = 1.0 x4: ArrayLike = 1 + 1j x5: ArrayLike = np.int8(1) x6: ArrayLike = np.float64(1) x7: ArrayLike = np.complex128(1) x8: ArrayLike = np.array([1, 2, 3]) x9: ArrayLike = [1, 2, 3] x10: ArrayLike = (1, 2, 3) x11: ArrayLike = "foo" x12: ArrayLike = memoryview(b'foo') class A: def __array__( self, dtype: None | np.dtype[Any] = None ) -> NDArray[np.float64]: return np.array([1.0, 2.0, 3.0]) x13: ArrayLike = A() scalar: _SupportsArray[np.dtype[np.int64]] = np.int64(1) scalar.__array__() array: _SupportsArray[np.dtype[np.int_]] = np.array(1) array.__array__() a: _SupportsArray[np.dtype[np.float64]] = A() a.__array__() a.__array__() # Escape hatch for when you mean to make something like an object # array. object_array_scalar: object = (i for i in range(10)) np.array(object_array_scalar)
| ver. 1.4 |
Github
|
.
| PHP 7.4.33 | Generation time: 0.41 |
proxy
|
phpinfo
|
Settings