| | import builtins |
| | from collections.abc import Callable |
| | from typing import Any, Union, overload, Literal |
| |
|
| | from numpy import ( |
| | bool_, |
| | dtype, |
| | float32, |
| | float64, |
| | int8, |
| | int16, |
| | int32, |
| | int64, |
| | int_, |
| | ndarray, |
| | uint, |
| | uint8, |
| | uint16, |
| | uint32, |
| | uint64, |
| | ) |
| | from numpy.random.bit_generator import BitGenerator |
| | from numpy._typing import ( |
| | ArrayLike, |
| | _ArrayLikeFloat_co, |
| | _ArrayLikeInt_co, |
| | _DoubleCodes, |
| | _DTypeLikeBool, |
| | _DTypeLikeInt, |
| | _DTypeLikeUInt, |
| | _Float32Codes, |
| | _Float64Codes, |
| | _Int8Codes, |
| | _Int16Codes, |
| | _Int32Codes, |
| | _Int64Codes, |
| | _IntCodes, |
| | _ShapeLike, |
| | _SingleCodes, |
| | _SupportsDType, |
| | _UInt8Codes, |
| | _UInt16Codes, |
| | _UInt32Codes, |
| | _UInt64Codes, |
| | _UIntCodes, |
| | ) |
| |
|
| | _DTypeLikeFloat32 = Union[ |
| | dtype[float32], |
| | _SupportsDType[dtype[float32]], |
| | type[float32], |
| | _Float32Codes, |
| | _SingleCodes, |
| | ] |
| |
|
| | _DTypeLikeFloat64 = Union[ |
| | dtype[float64], |
| | _SupportsDType[dtype[float64]], |
| | type[float], |
| | type[float64], |
| | _Float64Codes, |
| | _DoubleCodes, |
| | ] |
| |
|
| | class RandomState: |
| | _bit_generator: BitGenerator |
| | def __init__(self, seed: None | _ArrayLikeInt_co | BitGenerator = ...) -> 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[[str], RandomState], tuple[str], dict[str, Any]]: ... |
| | def seed(self, seed: None | _ArrayLikeFloat_co = ...) -> None: ... |
| | @overload |
| | def get_state(self, legacy: Literal[False] = ...) -> dict[str, Any]: ... |
| | @overload |
| | def get_state( |
| | self, legacy: Literal[True] = ... |
| | ) -> dict[str, Any] | tuple[str, ndarray[Any, dtype[uint32]], int, int, float]: ... |
| | def set_state( |
| | self, state: dict[str, Any] | tuple[str, ndarray[Any, dtype[uint32]], int, int, float] |
| | ) -> None: ... |
| | @overload |
| | def random_sample(self, size: None = ...) -> float: ... |
| | @overload |
| | def random_sample(self, size: _ShapeLike = ...) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def random(self, size: None = ...) -> float: ... |
| | @overload |
| | def random(self, size: _ShapeLike = ...) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def beta(self, a: float, b: float, size: None = ...) -> float: ... |
| | @overload |
| | def beta( |
| | self, a: _ArrayLikeFloat_co, b: _ArrayLikeFloat_co, size: None | _ShapeLike = ... |
| | ) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def exponential(self, scale: float = ..., size: None = ...) -> float: ... |
| | @overload |
| | def exponential( |
| | self, scale: _ArrayLikeFloat_co = ..., size: None | _ShapeLike = ... |
| | ) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def standard_exponential(self, size: None = ...) -> float: ... |
| | @overload |
| | def standard_exponential(self, size: _ShapeLike = ...) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def tomaxint(self, size: None = ...) -> int: ... |
| | @overload |
| | def tomaxint(self, size: _ShapeLike = ...) -> ndarray[Any, dtype[int_]]: ... |
| | @overload |
| | def randint( |
| | self, |
| | low: int, |
| | high: None | int = ..., |
| | ) -> int: ... |
| | @overload |
| | def randint( |
| | self, |
| | low: int, |
| | high: None | int = ..., |
| | size: None = ..., |
| | dtype: _DTypeLikeBool = ..., |
| | ) -> bool: ... |
| | @overload |
| | def randint( |
| | self, |
| | low: int, |
| | high: None | int = ..., |
| | size: None = ..., |
| | dtype: _DTypeLikeInt | _DTypeLikeUInt = ..., |
| | ) -> int: ... |
| | @overload |
| | def randint( |
| | self, |
| | low: _ArrayLikeInt_co, |
| | high: None | _ArrayLikeInt_co = ..., |
| | size: None | _ShapeLike = ..., |
| | ) -> ndarray[Any, dtype[int_]]: ... |
| | @overload |
| | def randint( |
| | self, |
| | low: _ArrayLikeInt_co, |
| | high: None | _ArrayLikeInt_co = ..., |
| | size: None | _ShapeLike = ..., |
| | dtype: _DTypeLikeBool = ..., |
| | ) -> ndarray[Any, dtype[bool_]]: ... |
| | @overload |
| | def randint( |
| | self, |
| | low: _ArrayLikeInt_co, |
| | high: None | _ArrayLikeInt_co = ..., |
| | size: None | _ShapeLike = ..., |
| | dtype: dtype[int8] | type[int8] | _Int8Codes | _SupportsDType[dtype[int8]] = ..., |
| | ) -> ndarray[Any, dtype[int8]]: ... |
| | @overload |
| | def randint( |
| | self, |
| | low: _ArrayLikeInt_co, |
| | high: None | _ArrayLikeInt_co = ..., |
| | size: None | _ShapeLike = ..., |
| | dtype: dtype[int16] | type[int16] | _Int16Codes | _SupportsDType[dtype[int16]] = ..., |
| | ) -> ndarray[Any, dtype[int16]]: ... |
| | @overload |
| | def randint( |
| | self, |
| | low: _ArrayLikeInt_co, |
| | high: None | _ArrayLikeInt_co = ..., |
| | size: None | _ShapeLike = ..., |
| | dtype: dtype[int32] | type[int32] | _Int32Codes | _SupportsDType[dtype[int32]] = ..., |
| | ) -> ndarray[Any, dtype[int32]]: ... |
| | @overload |
| | def randint( |
| | self, |
| | low: _ArrayLikeInt_co, |
| | high: None | _ArrayLikeInt_co = ..., |
| | size: None | _ShapeLike = ..., |
| | dtype: None | dtype[int64] | type[int64] | _Int64Codes | _SupportsDType[dtype[int64]] = ..., |
| | ) -> ndarray[Any, dtype[int64]]: ... |
| | @overload |
| | def randint( |
| | self, |
| | low: _ArrayLikeInt_co, |
| | high: None | _ArrayLikeInt_co = ..., |
| | size: None | _ShapeLike = ..., |
| | dtype: dtype[uint8] | type[uint8] | _UInt8Codes | _SupportsDType[dtype[uint8]] = ..., |
| | ) -> ndarray[Any, dtype[uint8]]: ... |
| | @overload |
| | def randint( |
| | self, |
| | low: _ArrayLikeInt_co, |
| | high: None | _ArrayLikeInt_co = ..., |
| | size: None | _ShapeLike = ..., |
| | dtype: dtype[uint16] | type[uint16] | _UInt16Codes | _SupportsDType[dtype[uint16]] = ..., |
| | ) -> ndarray[Any, dtype[uint16]]: ... |
| | @overload |
| | def randint( |
| | self, |
| | low: _ArrayLikeInt_co, |
| | high: None | _ArrayLikeInt_co = ..., |
| | size: None | _ShapeLike = ..., |
| | dtype: dtype[uint32] | type[uint32] | _UInt32Codes | _SupportsDType[dtype[uint32]] = ..., |
| | ) -> ndarray[Any, dtype[uint32]]: ... |
| | @overload |
| | def randint( |
| | self, |
| | low: _ArrayLikeInt_co, |
| | high: None | _ArrayLikeInt_co = ..., |
| | size: None | _ShapeLike = ..., |
| | dtype: dtype[uint64] | type[uint64] | _UInt64Codes | _SupportsDType[dtype[uint64]] = ..., |
| | ) -> ndarray[Any, dtype[uint64]]: ... |
| | @overload |
| | def randint( |
| | self, |
| | low: _ArrayLikeInt_co, |
| | high: None | _ArrayLikeInt_co = ..., |
| | size: None | _ShapeLike = ..., |
| | dtype: dtype[int_] | type[int] | type[int_] | _IntCodes | _SupportsDType[dtype[int_]] = ..., |
| | ) -> ndarray[Any, dtype[int_]]: ... |
| | @overload |
| | def randint( |
| | self, |
| | low: _ArrayLikeInt_co, |
| | high: None | _ArrayLikeInt_co = ..., |
| | size: None | _ShapeLike = ..., |
| | dtype: dtype[uint] | type[uint] | _UIntCodes | _SupportsDType[dtype[uint]] = ..., |
| | ) -> ndarray[Any, dtype[uint]]: ... |
| | def bytes(self, length: int) -> builtins.bytes: ... |
| | @overload |
| | def choice( |
| | self, |
| | a: int, |
| | size: None = ..., |
| | replace: bool = ..., |
| | p: None | _ArrayLikeFloat_co = ..., |
| | ) -> int: ... |
| | @overload |
| | def choice( |
| | self, |
| | a: int, |
| | size: _ShapeLike = ..., |
| | replace: bool = ..., |
| | p: None | _ArrayLikeFloat_co = ..., |
| | ) -> ndarray[Any, dtype[int_]]: ... |
| | @overload |
| | def choice( |
| | self, |
| | a: ArrayLike, |
| | size: None = ..., |
| | replace: bool = ..., |
| | p: None | _ArrayLikeFloat_co = ..., |
| | ) -> Any: ... |
| | @overload |
| | def choice( |
| | self, |
| | a: ArrayLike, |
| | size: _ShapeLike = ..., |
| | replace: bool = ..., |
| | p: None | _ArrayLikeFloat_co = ..., |
| | ) -> ndarray[Any, Any]: ... |
| | @overload |
| | def uniform(self, low: float = ..., high: float = ..., size: None = ...) -> float: ... |
| | @overload |
| | def uniform( |
| | self, |
| | low: _ArrayLikeFloat_co = ..., |
| | high: _ArrayLikeFloat_co = ..., |
| | size: None | _ShapeLike = ..., |
| | ) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def rand(self) -> float: ... |
| | @overload |
| | def rand(self, *args: int) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def randn(self) -> float: ... |
| | @overload |
| | def randn(self, *args: int) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def random_integers(self, low: int, high: None | int = ..., size: None = ...) -> int: ... |
| | @overload |
| | def random_integers( |
| | self, |
| | low: _ArrayLikeInt_co, |
| | high: None | _ArrayLikeInt_co = ..., |
| | size: None | _ShapeLike = ..., |
| | ) -> ndarray[Any, dtype[int_]]: ... |
| | @overload |
| | def standard_normal(self, size: None = ...) -> float: ... |
| | @overload |
| | def standard_normal( |
| | self, size: _ShapeLike = ... |
| | ) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def normal(self, loc: float = ..., scale: float = ..., size: None = ...) -> float: ... |
| | @overload |
| | def normal( |
| | self, |
| | loc: _ArrayLikeFloat_co = ..., |
| | scale: _ArrayLikeFloat_co = ..., |
| | size: None | _ShapeLike = ..., |
| | ) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def standard_gamma( |
| | self, |
| | shape: float, |
| | size: None = ..., |
| | ) -> float: ... |
| | @overload |
| | def standard_gamma( |
| | self, |
| | shape: _ArrayLikeFloat_co, |
| | size: None | _ShapeLike = ..., |
| | ) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def gamma(self, shape: float, scale: float = ..., size: None = ...) -> float: ... |
| | @overload |
| | def gamma( |
| | self, |
| | shape: _ArrayLikeFloat_co, |
| | scale: _ArrayLikeFloat_co = ..., |
| | size: None | _ShapeLike = ..., |
| | ) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def f(self, dfnum: float, dfden: float, size: None = ...) -> float: ... |
| | @overload |
| | def f( |
| | self, dfnum: _ArrayLikeFloat_co, dfden: _ArrayLikeFloat_co, size: None | _ShapeLike = ... |
| | ) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def noncentral_f(self, dfnum: float, dfden: float, nonc: float, size: None = ...) -> float: ... |
| | @overload |
| | def noncentral_f( |
| | self, |
| | dfnum: _ArrayLikeFloat_co, |
| | dfden: _ArrayLikeFloat_co, |
| | nonc: _ArrayLikeFloat_co, |
| | size: None | _ShapeLike = ..., |
| | ) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def chisquare(self, df: float, size: None = ...) -> float: ... |
| | @overload |
| | def chisquare( |
| | self, df: _ArrayLikeFloat_co, size: None | _ShapeLike = ... |
| | ) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def noncentral_chisquare(self, df: float, nonc: float, size: None = ...) -> float: ... |
| | @overload |
| | def noncentral_chisquare( |
| | self, df: _ArrayLikeFloat_co, nonc: _ArrayLikeFloat_co, size: None | _ShapeLike = ... |
| | ) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def standard_t(self, df: float, size: None = ...) -> float: ... |
| | @overload |
| | def standard_t( |
| | self, df: _ArrayLikeFloat_co, size: None = ... |
| | ) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def standard_t( |
| | self, df: _ArrayLikeFloat_co, size: _ShapeLike = ... |
| | ) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def vonmises(self, mu: float, kappa: float, size: None = ...) -> float: ... |
| | @overload |
| | def vonmises( |
| | self, mu: _ArrayLikeFloat_co, kappa: _ArrayLikeFloat_co, size: None | _ShapeLike = ... |
| | ) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def pareto(self, a: float, size: None = ...) -> float: ... |
| | @overload |
| | def pareto( |
| | self, a: _ArrayLikeFloat_co, size: None | _ShapeLike = ... |
| | ) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def weibull(self, a: float, size: None = ...) -> float: ... |
| | @overload |
| | def weibull( |
| | self, a: _ArrayLikeFloat_co, size: None | _ShapeLike = ... |
| | ) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def power(self, a: float, size: None = ...) -> float: ... |
| | @overload |
| | def power( |
| | self, a: _ArrayLikeFloat_co, size: None | _ShapeLike = ... |
| | ) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def standard_cauchy(self, size: None = ...) -> float: ... |
| | @overload |
| | def standard_cauchy(self, size: _ShapeLike = ...) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def laplace(self, loc: float = ..., scale: float = ..., size: None = ...) -> float: ... |
| | @overload |
| | def laplace( |
| | self, |
| | loc: _ArrayLikeFloat_co = ..., |
| | scale: _ArrayLikeFloat_co = ..., |
| | size: None | _ShapeLike = ..., |
| | ) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def gumbel(self, loc: float = ..., scale: float = ..., size: None = ...) -> float: ... |
| | @overload |
| | def gumbel( |
| | self, |
| | loc: _ArrayLikeFloat_co = ..., |
| | scale: _ArrayLikeFloat_co = ..., |
| | size: None | _ShapeLike = ..., |
| | ) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def logistic(self, loc: float = ..., scale: float = ..., size: None = ...) -> float: ... |
| | @overload |
| | def logistic( |
| | self, |
| | loc: _ArrayLikeFloat_co = ..., |
| | scale: _ArrayLikeFloat_co = ..., |
| | size: None | _ShapeLike = ..., |
| | ) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def lognormal(self, mean: float = ..., sigma: float = ..., size: None = ...) -> float: ... |
| | @overload |
| | def lognormal( |
| | self, |
| | mean: _ArrayLikeFloat_co = ..., |
| | sigma: _ArrayLikeFloat_co = ..., |
| | size: None | _ShapeLike = ..., |
| | ) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def rayleigh(self, scale: float = ..., size: None = ...) -> float: ... |
| | @overload |
| | def rayleigh( |
| | self, scale: _ArrayLikeFloat_co = ..., size: None | _ShapeLike = ... |
| | ) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def wald(self, mean: float, scale: float, size: None = ...) -> float: ... |
| | @overload |
| | def wald( |
| | self, mean: _ArrayLikeFloat_co, scale: _ArrayLikeFloat_co, size: None | _ShapeLike = ... |
| | ) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def triangular(self, left: float, mode: float, right: float, size: None = ...) -> float: ... |
| | @overload |
| | def triangular( |
| | self, |
| | left: _ArrayLikeFloat_co, |
| | mode: _ArrayLikeFloat_co, |
| | right: _ArrayLikeFloat_co, |
| | size: None | _ShapeLike = ..., |
| | ) -> ndarray[Any, dtype[float64]]: ... |
| | @overload |
| | def binomial(self, n: int, p: float, size: None = ...) -> int: ... |
| | @overload |
| | def binomial( |
| | self, n: _ArrayLikeInt_co, p: _ArrayLikeFloat_co, size: None | _ShapeLike = ... |
| | ) -> ndarray[Any, dtype[int_]]: ... |
| | @overload |
| | def negative_binomial(self, n: float, p: float, size: None = ...) -> int: ... |
| | @overload |
| | def negative_binomial( |
| | self, n: _ArrayLikeFloat_co, p: _ArrayLikeFloat_co, size: None | _ShapeLike = ... |
| | ) -> ndarray[Any, dtype[int_]]: ... |
| | @overload |
| | def poisson(self, lam: float = ..., size: None = ...) -> int: ... |
| | @overload |
| | def poisson( |
| | self, lam: _ArrayLikeFloat_co = ..., size: None | _ShapeLike = ... |
| | ) -> ndarray[Any, dtype[int_]]: ... |
| | @overload |
| | def zipf(self, a: float, size: None = ...) -> int: ... |
| | @overload |
| | def zipf( |
| | self, a: _ArrayLikeFloat_co, size: None | _ShapeLike = ... |
| | ) -> ndarray[Any, dtype[int_]]: ... |
| | @overload |
| | def geometric(self, p: float, size: None = ...) -> int: ... |
| | @overload |
| | def geometric( |
| | self, p: _ArrayLikeFloat_co, size: None | _ShapeLike = ... |
| | ) -> ndarray[Any, dtype[int_]]: ... |
| | @overload |
| | def hypergeometric(self, ngood: int, nbad: int, nsample: int, size: None = ...) -> int: ... |
| | @overload |
| | def hypergeometric( |
| | self, |
| | ngood: _ArrayLikeInt_co, |
| | nbad: _ArrayLikeInt_co, |
| | nsample: _ArrayLikeInt_co, |
| | size: None | _ShapeLike = ..., |
| | ) -> ndarray[Any, dtype[int_]]: ... |
| | @overload |
| | def logseries(self, p: float, size: None = ...) -> int: ... |
| | @overload |
| | def logseries( |
| | self, p: _ArrayLikeFloat_co, size: None | _ShapeLike = ... |
| | ) -> ndarray[Any, dtype[int_]]: ... |
| | def multivariate_normal( |
| | self, |
| | mean: _ArrayLikeFloat_co, |
| | cov: _ArrayLikeFloat_co, |
| | size: None | _ShapeLike = ..., |
| | check_valid: Literal["warn", "raise", "ignore"] = ..., |
| | tol: float = ..., |
| | ) -> ndarray[Any, dtype[float64]]: ... |
| | def multinomial( |
| | self, n: _ArrayLikeInt_co, pvals: _ArrayLikeFloat_co, size: None | _ShapeLike = ... |
| | ) -> ndarray[Any, dtype[int_]]: ... |
| | def dirichlet( |
| | self, alpha: _ArrayLikeFloat_co, size: None | _ShapeLike = ... |
| | ) -> ndarray[Any, dtype[float64]]: ... |
| | def shuffle(self, x: ArrayLike) -> None: ... |
| | @overload |
| | def permutation(self, x: int) -> ndarray[Any, dtype[int_]]: ... |
| | @overload |
| | def permutation(self, x: ArrayLike) -> ndarray[Any, 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 |
| | |
| | sample = _rand.random_sample |
| | ranf = _rand.random_sample |
| |
|
| | def set_bit_generator(bitgen: BitGenerator) -> None: |
| | ... |
| |
|
| | def get_bit_generator() -> BitGenerator: |
| | ... |
| |
|