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MoFin/venv/lib/python3.12/site-packages/numpy/random/mtrand.pyi
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2026-06-30 02:56:35 +08:00

997 lines
26 KiB
Python

from builtins import bytes as py_bytes
from collections.abc import Callable
from typing import Any, Literal, overload
import numpy as np
from numpy._typing import (
ArrayLike,
NDArray,
_ArrayLikeFloat_co,
_ArrayLikeInt_co,
_BoolCodes,
_DTypeLike,
_DTypeLikeBool,
_DTypeLikeInt,
_Int8Codes,
_Int16Codes,
_Int32Codes,
_Int64Codes,
_IntPCodes,
_ShapeLike,
_UInt8Codes,
_UInt16Codes,
_UInt32Codes,
_UInt64Codes,
_UIntPCodes,
)
from numpy.random.bit_generator import BitGenerator
__all__ = [
"RandomState",
"beta",
"binomial",
"bytes",
"chisquare",
"choice",
"dirichlet",
"exponential",
"f",
"gamma",
"geometric",
"get_bit_generator",
"get_state",
"gumbel",
"hypergeometric",
"laplace",
"logistic",
"lognormal",
"logseries",
"multinomial",
"multivariate_normal",
"negative_binomial",
"noncentral_chisquare",
"noncentral_f",
"normal",
"pareto",
"permutation",
"poisson",
"power",
"rand",
"randint",
"randn",
"random",
"random_integers",
"random_sample",
"ranf",
"rayleigh",
"sample",
"seed",
"set_bit_generator",
"set_state",
"shuffle",
"standard_cauchy",
"standard_exponential",
"standard_gamma",
"standard_normal",
"standard_t",
"triangular",
"uniform",
"vonmises",
"wald",
"weibull",
"zipf",
]
class RandomState:
_bit_generator: BitGenerator
def __init__(self, seed: _ArrayLikeInt_co | BitGenerator | None = None) -> None: ...
def __repr__(self) -> str: ...
def __str__(self) -> str: ...
def __getstate__(self) -> dict[str, Any]: ...
def __setstate__(self, state: dict[str, Any]) -> None: ...
def __reduce__(self) -> tuple[Callable[[BitGenerator], RandomState], tuple[BitGenerator], dict[str, Any]]: ...
#
def seed(self, seed: _ArrayLikeFloat_co | None = None) -> None: ...
#
@overload
def get_state(self, legacy: Literal[False] = False) -> dict[str, Any]: ...
@overload
def get_state(self, legacy: Literal[True] = True) -> dict[str, Any] | tuple[str, NDArray[np.uint32], int, int, float]: ...
#
def set_state(self, state: dict[str, Any] | tuple[str, NDArray[np.uint32], int, int, float]) -> None: ...
#
@overload
def random_sample(self, size: None = None) -> float: ...
@overload
def random_sample(self, size: _ShapeLike) -> NDArray[np.float64]: ...
#
@overload
def random(self, size: None = None) -> float: ...
@overload
def random(self, size: _ShapeLike) -> NDArray[np.float64]: ...
#
@overload
def beta(self, a: float, b: float, size: None = None) -> float: ...
@overload
def beta(self, a: _ArrayLikeFloat_co, b: _ArrayLikeFloat_co, size: _ShapeLike) -> NDArray[np.float64]: ...
@overload
def beta(self, a: _ArrayLikeFloat_co, b: _ArrayLikeFloat_co, size: None = None) -> NDArray[np.float64] | Any: ...
#
@overload
def exponential(self, scale: float = 1.0, size: None = None) -> float: ...
@overload
def exponential(self, scale: _ArrayLikeFloat_co, size: _ShapeLike) -> NDArray[np.float64]: ...
@overload
def exponential(self, scale: _ArrayLikeFloat_co = 1.0, *, size: _ShapeLike) -> NDArray[np.float64]: ...
@overload
def exponential(self, scale: _ArrayLikeFloat_co = 1.0, size: None = None) -> NDArray[np.float64] | Any: ...
#
@overload
def standard_exponential(self, size: None = None) -> float: ...
@overload
def standard_exponential(self, size: _ShapeLike) -> NDArray[np.float64]: ...
#
@overload
def tomaxint(self, size: None = None) -> int: ...
@overload # Generates long values, but stores it in a 64bit int:
def tomaxint(self, size: _ShapeLike) -> NDArray[np.int64]: ...
#
@overload
def randint(
self,
low: int,
high: int | None = None,
size: None = None,
*,
dtype: type[bool],
) -> bool: ...
@overload
def randint(
self,
low: int,
high: int | None = None,
size: None = None,
dtype: type[int] = int,
) -> int: ...
@overload
def randint(
self,
low: int,
high: int | None = None,
size: None = None,
*,
dtype: _DTypeLike[np.bool] | _BoolCodes,
) -> np.bool: ...
@overload
def randint(
self,
low: int,
high: int | None = None,
size: None = None,
*,
dtype: _DTypeLike[np.int8] | _Int8Codes,
) -> np.int8: ...
@overload
def randint(
self,
low: int,
high: int | None = None,
size: None = None,
*,
dtype: _DTypeLike[np.int16] | _Int16Codes,
) -> np.int16: ...
@overload
def randint(
self,
low: int,
high: int | None = None,
size: None = None,
*,
dtype: _DTypeLike[np.int32] | _Int32Codes,
) -> np.int32: ...
@overload
def randint(
self,
low: int,
high: int | None = None,
size: None = None,
*,
dtype: _DTypeLike[np.int64] | _Int64Codes,
) -> np.int64: ...
@overload
def randint(
self,
low: int,
high: int | None = None,
size: None = None,
*,
dtype: _DTypeLike[np.int_] | _IntPCodes,
) -> np.int_: ...
@overload
def randint(
self,
low: int,
high: int | None = None,
size: None = None,
*,
dtype: _DTypeLike[np.uint8] | _UInt8Codes,
) -> np.uint8: ...
@overload
def randint(
self,
low: int,
high: int | None = None,
size: None = None,
*,
dtype: _DTypeLike[np.uint16] | _UInt16Codes,
) -> np.uint16: ...
@overload
def randint(
self,
low: int,
high: int | None = None,
size: None = None,
*,
dtype: _DTypeLike[np.uint32] | _UInt32Codes,
) -> np.uint32: ...
@overload
def randint(
self,
low: int,
high: int | None = None,
size: None = None,
*,
dtype: _DTypeLike[np.uint64] | _UInt64Codes,
) -> np.uint64: ...
@overload
def randint(
self,
low: int,
high: int | None = None,
size: None = None,
*,
dtype: _DTypeLike[np.uintp] | _UIntPCodes,
) -> np.uint: ...
@overload
def randint(
self,
low: int,
high: int | None = None,
size: None = None,
*,
dtype: _DTypeLikeInt,
) -> np.integer | Any: ...
@overload
def randint(
self,
low: _ArrayLikeInt_co,
high: _ArrayLikeInt_co | None = None,
size: _ShapeLike | None = None,
*,
dtype: _DTypeLikeBool,
) -> NDArray[np.bool] | Any: ...
@overload
def randint(
self,
low: _ArrayLikeInt_co,
high: _ArrayLikeInt_co | None = None,
size: _ShapeLike | None = None,
*,
dtype: _DTypeLike[np.int8] | _Int8Codes,
) -> NDArray[np.int8] | Any: ...
@overload
def randint(
self,
low: _ArrayLikeInt_co,
high: _ArrayLikeInt_co | None = None,
size: _ShapeLike | None = None,
*,
dtype: _DTypeLike[np.int16] | _Int16Codes,
) -> NDArray[np.int16] | Any: ...
@overload
def randint(
self,
low: _ArrayLikeInt_co,
high: _ArrayLikeInt_co | None = None,
size: _ShapeLike | None = None,
*,
dtype: _DTypeLike[np.int32] | _Int32Codes,
) -> NDArray[np.int32] | Any: ...
@overload
def randint(
self,
low: _ArrayLikeInt_co,
high: _ArrayLikeInt_co | None = None,
size: _ShapeLike | None = None,
*,
dtype: _DTypeLike[np.int64] | _Int64Codes,
) -> NDArray[np.int64] | Any: ...
@overload
def randint(
self,
low: _ArrayLikeInt_co,
high: _ArrayLikeInt_co | None = None,
size: _ShapeLike | None = None,
dtype: type[int] | _DTypeLike[np.int_] | _IntPCodes = int,
) -> NDArray[np.int_] | Any: ...
@overload
def randint(
self,
low: _ArrayLikeInt_co,
high: _ArrayLikeInt_co | None = None,
size: _ShapeLike | None = None,
*,
dtype: _DTypeLike[np.uint8] | _UInt8Codes,
) -> NDArray[np.uint8] | Any: ...
@overload
def randint(
self,
low: _ArrayLikeInt_co,
high: _ArrayLikeInt_co | None = None,
size: _ShapeLike | None = None,
*,
dtype: _DTypeLike[np.uint16] | _UInt16Codes,
) -> NDArray[np.uint16] | Any: ...
@overload
def randint(
self,
low: _ArrayLikeInt_co,
high: _ArrayLikeInt_co | None = None,
size: _ShapeLike | None = None,
*,
dtype: _DTypeLike[np.uint32] | _UInt32Codes,
) -> NDArray[np.uint32] | Any: ...
@overload
def randint(
self,
low: _ArrayLikeInt_co,
high: _ArrayLikeInt_co | None = None,
size: _ShapeLike | None = None,
*,
dtype: _DTypeLike[np.uint64] | _UInt64Codes,
) -> NDArray[np.uint64] | Any: ...
@overload
def randint(
self,
low: _ArrayLikeInt_co,
high: _ArrayLikeInt_co | None = None,
size: _ShapeLike | None = None,
*,
dtype: _DTypeLikeInt,
) -> NDArray[np.integer] | Any: ...
#
def bytes(self, length: int) -> py_bytes: ...
#
@overload
def choice(
self,
a: int,
size: None = None,
replace: bool = True,
p: _ArrayLikeFloat_co | None = None,
) -> int: ...
@overload
def choice(
self,
a: int,
size: _ShapeLike,
replace: bool = True,
p: _ArrayLikeFloat_co | None = None,
) -> NDArray[np.long]: ...
@overload
def choice(
self,
a: ArrayLike,
size: None = None,
replace: bool = True,
p: _ArrayLikeFloat_co | None = None,
) -> Any: ...
@overload
def choice(
self,
a: ArrayLike,
size: _ShapeLike,
replace: bool = True,
p: _ArrayLikeFloat_co | None = None,
) -> NDArray[Any]: ...
#
@overload
def uniform(
self,
low: float = 0.0,
high: float = 1.0,
size: None = None,
) -> float: ...
@overload
def uniform(
self,
low: _ArrayLikeFloat_co,
high: _ArrayLikeFloat_co,
size: _ShapeLike,
) -> NDArray[np.float64]: ...
@overload
def uniform(
self,
low: _ArrayLikeFloat_co = 0.0,
high: _ArrayLikeFloat_co = 1.0,
*,
size: _ShapeLike,
) -> NDArray[np.float64]: ...
@overload
def uniform(
self,
low: _ArrayLikeFloat_co = 0.0,
high: _ArrayLikeFloat_co = 1.0,
size: None = None,
) -> NDArray[np.float64] | Any: ...
#
@overload
def rand(self, /) -> float: ...
@overload
def rand(self, arg0: int, /, *args: int) -> NDArray[np.float64]: ...
#
@overload
def randn(self, /) -> float: ...
@overload
def randn(self, arg0: int, /, *args: int) -> NDArray[np.float64]: ...
#
@overload
def random_integers(
self,
low: int,
high: int | None = None,
size: None = None,
) -> int: ...
@overload
def random_integers(
self,
low: _ArrayLikeInt_co,
high: _ArrayLikeInt_co | None,
size: _ShapeLike,
) -> NDArray[np.long]: ...
@overload
def random_integers(
self,
low: _ArrayLikeInt_co,
high: _ArrayLikeInt_co | None = None,
*,
size: _ShapeLike,
) -> NDArray[np.long]: ...
@overload
def random_integers(
self,
low: _ArrayLikeInt_co,
high: _ArrayLikeInt_co | None = None,
size: None = None,
) -> NDArray[np.long] | Any: ...
#
@overload
def standard_normal(self, size: None = None) -> float: ...
@overload
def standard_normal(self, size: _ShapeLike) -> NDArray[np.float64]: ...
#
@overload
def normal(
self,
loc: float = 0.0,
scale: float = 1.0,
size: None = None,
) -> float: ...
@overload
def normal(
self,
loc: _ArrayLikeFloat_co,
scale: _ArrayLikeFloat_co,
size: _ShapeLike,
) -> NDArray[np.float64]: ...
@overload
def normal(
self,
loc: _ArrayLikeFloat_co = 0.0,
scale: _ArrayLikeFloat_co = 1.0,
*,
size: _ShapeLike,
) -> NDArray[np.float64]: ...
@overload
def normal(
self,
loc: _ArrayLikeFloat_co = 0.0,
scale: _ArrayLikeFloat_co = 1.0,
size: None = None,
) -> NDArray[np.float64] | Any: ...
#
@overload
def standard_gamma(self, shape: float, size: None = None) -> float: ...
@overload
def standard_gamma(self, shape: _ArrayLikeFloat_co, size: _ShapeLike) -> NDArray[np.float64]: ...
@overload
def standard_gamma(self, shape: _ArrayLikeFloat_co, size: None = None) -> NDArray[np.float64] | Any: ...
#
@overload
def gamma(
self,
shape: float,
scale: float = 1.0,
size: None = None,
) -> float: ...
@overload
def gamma(
self,
shape: _ArrayLikeFloat_co,
scale: _ArrayLikeFloat_co,
size: _ShapeLike,
) -> NDArray[np.float64]: ...
@overload
def gamma(
self,
shape: _ArrayLikeFloat_co,
scale: _ArrayLikeFloat_co = 1.0,
*,
size: _ShapeLike,
) -> NDArray[np.float64]: ...
@overload
def gamma(
self,
shape: _ArrayLikeFloat_co,
scale: _ArrayLikeFloat_co = 1.0,
size: None = None,
) -> NDArray[np.float64] | Any: ...
#
@overload
def f(self, dfnum: float, dfden: float, size: None = None) -> float: ...
@overload
def f(self, dfnum: _ArrayLikeFloat_co, dfden: _ArrayLikeFloat_co, size: _ShapeLike) -> NDArray[np.float64]: ...
@overload
def f(self, dfnum: _ArrayLikeFloat_co, dfden: _ArrayLikeFloat_co, size: None = None) -> NDArray[np.float64] | Any: ...
#
@overload
def noncentral_f(
self,
dfnum: float,
dfden: float,
nonc: float,
size: None = None,
) -> float: ...
@overload
def noncentral_f(
self,
dfnum: _ArrayLikeFloat_co,
dfden: _ArrayLikeFloat_co,
nonc: _ArrayLikeFloat_co,
size: _ShapeLike,
) -> NDArray[np.float64]: ...
@overload
def noncentral_f(
self,
dfnum: _ArrayLikeFloat_co,
dfden: _ArrayLikeFloat_co,
nonc: _ArrayLikeFloat_co,
size: None = None,
) -> NDArray[np.float64] | Any: ...
#
@overload
def chisquare(self, df: float, size: None = None) -> float: ...
@overload
def chisquare(self, df: _ArrayLikeFloat_co, size: _ShapeLike) -> NDArray[np.float64]: ...
@overload
def chisquare(self, df: _ArrayLikeFloat_co, size: None = None) -> NDArray[np.float64] | Any: ...
#
@overload
def noncentral_chisquare(
self,
df: float,
nonc: float,
size: None = None,
) -> float: ...
@overload
def noncentral_chisquare(
self,
df: _ArrayLikeFloat_co,
nonc: _ArrayLikeFloat_co,
size: _ShapeLike,
) -> NDArray[np.float64]: ...
@overload
def noncentral_chisquare(
self,
df: _ArrayLikeFloat_co,
nonc: _ArrayLikeFloat_co,
size: None = None,
) -> NDArray[np.float64] | Any: ...
#
@overload
def standard_t(self, df: float, size: None = None) -> float: ...
@overload
def standard_t(self, df: _ArrayLikeFloat_co, size: _ShapeLike) -> NDArray[np.float64]: ...
@overload
def standard_t(self, df: _ArrayLikeFloat_co, size: None = None) -> NDArray[np.float64] | Any: ...
#
@overload
def vonmises(self, mu: float, kappa: float, size: None = None) -> float: ...
@overload
def vonmises(self, mu: _ArrayLikeFloat_co, kappa: _ArrayLikeFloat_co, size: _ShapeLike) -> NDArray[np.float64]: ...
@overload
def vonmises(self, mu: _ArrayLikeFloat_co, kappa: _ArrayLikeFloat_co, size: None = None) -> NDArray[np.float64] | Any: ...
#
@overload
def pareto(self, a: float, size: None = None) -> float: ...
@overload
def pareto(self, a: _ArrayLikeFloat_co, size: _ShapeLike) -> NDArray[np.float64]: ...
@overload
def pareto(self, a: _ArrayLikeFloat_co, size: None = None) -> NDArray[np.float64] | Any: ...
#
@overload
def weibull(self, a: float, size: None = None) -> float: ...
@overload
def weibull(self, a: _ArrayLikeFloat_co, size: _ShapeLike) -> NDArray[np.float64]: ...
@overload
def weibull(self, a: _ArrayLikeFloat_co, size: None = None) -> NDArray[np.float64] | Any: ...
#
@overload
def power(self, a: float, size: None = None) -> float: ...
@overload
def power(self, a: _ArrayLikeFloat_co, size: _ShapeLike) -> NDArray[np.float64]: ...
@overload
def power(self, a: _ArrayLikeFloat_co, size: None = None) -> NDArray[np.float64] | Any: ...
#
@overload
def standard_cauchy(self, size: None = None) -> float: ...
@overload
def standard_cauchy(self, size: _ShapeLike) -> NDArray[np.float64]: ...
#
@overload
def laplace(
self,
loc: float = 0.0,
scale: float = 1.0,
size: None = None,
) -> float: ...
@overload
def laplace(
self,
loc: _ArrayLikeFloat_co,
scale: _ArrayLikeFloat_co,
size: _ShapeLike,
) -> NDArray[np.float64]: ...
@overload
def laplace(
self,
loc: _ArrayLikeFloat_co = 0.0,
scale: _ArrayLikeFloat_co = 1.0,
*,
size: _ShapeLike,
) -> NDArray[np.float64]: ...
@overload
def laplace(
self,
loc: _ArrayLikeFloat_co = 0.0,
scale: _ArrayLikeFloat_co = 1.0,
size: None = None,
) -> NDArray[np.float64] | Any: ...
#
@overload
def gumbel(
self,
loc: float = 0.0,
scale: float = 1.0,
size: None = None,
) -> float: ...
@overload
def gumbel(
self,
loc: _ArrayLikeFloat_co,
scale: _ArrayLikeFloat_co,
size: _ShapeLike,
) -> NDArray[np.float64]: ...
@overload
def gumbel(
self,
loc: _ArrayLikeFloat_co = 0.0,
scale: _ArrayLikeFloat_co = 1.0,
*,
size: _ShapeLike,
) -> NDArray[np.float64]: ...
@overload
def gumbel(
self,
loc: _ArrayLikeFloat_co = 0.0,
scale: _ArrayLikeFloat_co = 1.0,
size: None = None,
) -> NDArray[np.float64] | Any: ...
#
@overload
def logistic(
self,
loc: float = 0.0,
scale: float = 1.0,
size: None = None,
) -> float: ...
@overload
def logistic(
self,
loc: _ArrayLikeFloat_co,
scale: _ArrayLikeFloat_co,
size: _ShapeLike,
) -> NDArray[np.float64]: ...
@overload
def logistic(
self,
loc: _ArrayLikeFloat_co = 0.0,
scale: _ArrayLikeFloat_co = 1.0,
*,
size: _ShapeLike,
) -> NDArray[np.float64]: ...
@overload
def logistic(
self,
loc: _ArrayLikeFloat_co = 0.0,
scale: _ArrayLikeFloat_co = 1.0,
size: None = None,
) -> NDArray[np.float64] | Any: ...
#
@overload
def lognormal(
self,
mean: float = 0.0,
sigma: float = 1.0,
size: None = None,
) -> float: ...
@overload
def lognormal(
self,
mean: _ArrayLikeFloat_co,
sigma: _ArrayLikeFloat_co,
size: _ShapeLike,
) -> NDArray[np.float64]: ...
@overload
def lognormal(
self,
mean: _ArrayLikeFloat_co = 0.0,
sigma: _ArrayLikeFloat_co = 1.0,
*,
size: _ShapeLike,
) -> NDArray[np.float64]: ...
@overload
def lognormal(
self,
mean: _ArrayLikeFloat_co = 0.0,
sigma: _ArrayLikeFloat_co = 1.0,
size: None = None,
) -> NDArray[np.float64] | Any: ...
#
@overload
def rayleigh(self, scale: float = 1.0, size: None = None) -> float: ...
@overload
def rayleigh(self, scale: _ArrayLikeFloat_co, size: _ShapeLike) -> NDArray[np.float64]: ...
@overload
def rayleigh(self, scale: _ArrayLikeFloat_co = 1.0, *, size: _ShapeLike) -> NDArray[np.float64]: ...
@overload
def rayleigh(self, scale: _ArrayLikeFloat_co = 1.0, size: None = None) -> NDArray[np.float64] | Any: ...
#
@overload
def wald(self, mean: float, scale: float, size: None = None) -> float: ...
@overload
def wald(self, mean: _ArrayLikeFloat_co, scale: _ArrayLikeFloat_co, size: _ShapeLike) -> NDArray[np.float64]: ...
@overload
def wald(self, mean: _ArrayLikeFloat_co, scale: _ArrayLikeFloat_co, size: None = None) -> NDArray[np.float64] | Any: ...
#
@overload
def triangular(
self,
left: float,
mode: float,
right: float,
size: None = None,
) -> float: ...
@overload
def triangular(
self,
left: _ArrayLikeFloat_co,
mode: _ArrayLikeFloat_co,
right: _ArrayLikeFloat_co,
size: _ShapeLike,
) -> NDArray[np.float64]: ...
@overload
def triangular(
self,
left: _ArrayLikeFloat_co,
mode: _ArrayLikeFloat_co,
right: _ArrayLikeFloat_co,
size: None = None,
) -> NDArray[np.float64] | Any: ...
#
@overload
def binomial(self, n: int, p: float, size: None = None) -> int: ...
@overload
def binomial(self, n: _ArrayLikeInt_co, p: _ArrayLikeFloat_co, size: _ShapeLike) -> NDArray[np.long]: ...
@overload
def binomial(self, n: _ArrayLikeInt_co, p: _ArrayLikeFloat_co, size: None = None) -> NDArray[np.long] | Any: ...
#
@overload
def negative_binomial(self, n: float, p: float, size: None = None) -> int: ...
@overload
def negative_binomial(self, n: _ArrayLikeFloat_co, p: _ArrayLikeFloat_co, size: _ShapeLike) -> NDArray[np.long]: ...
@overload
def negative_binomial(self, n: _ArrayLikeFloat_co, p: _ArrayLikeFloat_co, size: None = None) -> NDArray[np.long] | Any: ...
#
@overload
def poisson(self, lam: float = 1.0, size: None = None) -> int: ...
@overload
def poisson(self, lam: _ArrayLikeFloat_co, size: _ShapeLike) -> NDArray[np.long]: ...
@overload
def poisson(self, lam: _ArrayLikeFloat_co = 1.0, *, size: _ShapeLike) -> NDArray[np.long]: ...
@overload
def poisson(self, lam: _ArrayLikeFloat_co = 1.0, size: None = None) -> NDArray[np.long] | Any: ...
#
@overload
def zipf(self, a: float, size: None = None) -> int: ...
@overload
def zipf(self, a: _ArrayLikeFloat_co, size: _ShapeLike) -> NDArray[np.long]: ...
@overload
def zipf(self, a: _ArrayLikeFloat_co, size: None = None) -> NDArray[np.long] | Any: ...
#
@overload
def geometric(self, p: float, size: None = None) -> int: ...
@overload
def geometric(self, p: _ArrayLikeFloat_co, size: _ShapeLike) -> NDArray[np.long]: ...
@overload
def geometric(self, p: _ArrayLikeFloat_co, size: None = None) -> NDArray[np.long] | Any: ...
#
@overload
def hypergeometric(
self,
ngood: int,
nbad: int,
nsample: int,
size: None = None,
) -> int: ...
@overload
def hypergeometric(
self,
ngood: _ArrayLikeInt_co,
nbad: _ArrayLikeInt_co,
nsample: _ArrayLikeInt_co,
size: _ShapeLike,
) -> NDArray[np.long]: ...
@overload
def hypergeometric(
self,
ngood: _ArrayLikeInt_co,
nbad: _ArrayLikeInt_co,
nsample: _ArrayLikeInt_co,
size: None = None,
) -> NDArray[np.long] | Any: ...
#
@overload
def logseries(self, p: float, size: None = None) -> int: ...
@overload
def logseries(self, p: _ArrayLikeFloat_co, size: _ShapeLike) -> NDArray[np.long]: ...
@overload
def logseries(self, p: _ArrayLikeFloat_co, size: None = None) -> NDArray[np.long] | Any: ...
#
def multivariate_normal(
self,
mean: _ArrayLikeFloat_co,
cov: _ArrayLikeFloat_co,
size: _ShapeLike | None = None,
check_valid: Literal["warn", "raise", "ignore"] = "warn",
tol: float = 1e-8,
) -> NDArray[np.float64]: ...
#
def multinomial(self, n: _ArrayLikeInt_co, pvals: _ArrayLikeFloat_co, size: _ShapeLike | None = None) -> NDArray[np.long]: ...
#
def dirichlet(self, alpha: _ArrayLikeFloat_co, size: _ShapeLike | None = None) -> NDArray[np.float64]: ...
#
def shuffle(self, x: ArrayLike) -> None: ...
#
@overload
def permutation(self, x: int) -> NDArray[np.long]: ...
@overload
def permutation(self, x: ArrayLike) -> NDArray[Any]: ...
_rand: RandomState
beta = _rand.beta
binomial = _rand.binomial
bytes = _rand.bytes
chisquare = _rand.chisquare
choice = _rand.choice
dirichlet = _rand.dirichlet
exponential = _rand.exponential
f = _rand.f
gamma = _rand.gamma
get_state = _rand.get_state
geometric = _rand.geometric
gumbel = _rand.gumbel
hypergeometric = _rand.hypergeometric
laplace = _rand.laplace
logistic = _rand.logistic
lognormal = _rand.lognormal
logseries = _rand.logseries
multinomial = _rand.multinomial
multivariate_normal = _rand.multivariate_normal
negative_binomial = _rand.negative_binomial
noncentral_chisquare = _rand.noncentral_chisquare
noncentral_f = _rand.noncentral_f
normal = _rand.normal
pareto = _rand.pareto
permutation = _rand.permutation
poisson = _rand.poisson
power = _rand.power
rand = _rand.rand
randint = _rand.randint
randn = _rand.randn
random = _rand.random
random_integers = _rand.random_integers
random_sample = _rand.random_sample
rayleigh = _rand.rayleigh
seed = _rand.seed
set_state = _rand.set_state
shuffle = _rand.shuffle
standard_cauchy = _rand.standard_cauchy
standard_exponential = _rand.standard_exponential
standard_gamma = _rand.standard_gamma
standard_normal = _rand.standard_normal
standard_t = _rand.standard_t
triangular = _rand.triangular
uniform = _rand.uniform
vonmises = _rand.vonmises
wald = _rand.wald
weibull = _rand.weibull
zipf = _rand.zipf
# Two legacy that are trivial wrappers around random_sample
sample = _rand.random_sample
ranf = _rand.random_sample
def set_bit_generator(bitgen: BitGenerator) -> None: ...
def get_bit_generator() -> BitGenerator: ...