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。
| DIR:/opt/cloudlinux/venv/lib64/python3.11/site-packages/numpy/random/ |
| Current File : //opt/cloudlinux/venv/lib64/python3.11/site-packages/numpy/random/__init__.py |
"""
========================
Random Number Generation
========================
Use ``default_rng()`` to create a `Generator` and call its methods.
=============== =========================================================
Generator
--------------- ---------------------------------------------------------
Generator Class implementing all of the random number distributions
default_rng Default constructor for ``Generator``
=============== =========================================================
============================================= ===
BitGenerator Streams that work with Generator
--------------------------------------------- ---
MT19937
PCG64
PCG64DXSM
Philox
SFC64
============================================= ===
============================================= ===
Getting entropy to initialize a BitGenerator
--------------------------------------------- ---
SeedSequence
============================================= ===
Legacy
------
For backwards compatibility with previous versions of numpy before 1.17, the
various aliases to the global `RandomState` methods are left alone and do not
use the new `Generator` API.
==================== =========================================================
Utility functions
-------------------- ---------------------------------------------------------
random Uniformly distributed floats over ``[0, 1)``
bytes Uniformly distributed random bytes.
permutation Randomly permute a sequence / generate a random sequence.
shuffle Randomly permute a sequence in place.
choice Random sample from 1-D array.
==================== =========================================================
==================== =========================================================
Compatibility
functions - removed
in the new API
-------------------- ---------------------------------------------------------
rand Uniformly distributed values.
randn Normally distributed values.
ranf Uniformly distributed floating point numbers.
random_integers Uniformly distributed integers in a given range.
(deprecated, use ``integers(..., closed=True)`` instead)
random_sample Alias for `random_sample`
randint Uniformly distributed integers in a given range
seed Seed the legacy random number generator.
==================== =========================================================
==================== =========================================================
Univariate
distributions
-------------------- ---------------------------------------------------------
beta Beta distribution over ``[0, 1]``.
binomial Binomial distribution.
chisquare :math:`\\chi^2` distribution.
exponential Exponential distribution.
f F (Fisher-Snedecor) distribution.
gamma Gamma distribution.
geometric Geometric distribution.
gumbel Gumbel distribution.
hypergeometric Hypergeometric distribution.
laplace Laplace distribution.
logistic Logistic distribution.
lognormal Log-normal distribution.
logseries Logarithmic series distribution.
negative_binomial Negative binomial distribution.
noncentral_chisquare Non-central chi-square distribution.
noncentral_f Non-central F distribution.
normal Normal / Gaussian distribution.
pareto Pareto distribution.
poisson Poisson distribution.
power Power distribution.
rayleigh Rayleigh distribution.
triangular Triangular distribution.
uniform Uniform distribution.
vonmises Von Mises circular distribution.
wald Wald (inverse Gaussian) distribution.
weibull Weibull distribution.
zipf Zipf's distribution over ranked data.
==================== =========================================================
==================== ==========================================================
Multivariate
distributions
-------------------- ----------------------------------------------------------
dirichlet Multivariate generalization of Beta distribution.
multinomial Multivariate generalization of the binomial distribution.
multivariate_normal Multivariate generalization of the normal distribution.
==================== ==========================================================
==================== =========================================================
Standard
distributions
-------------------- ---------------------------------------------------------
standard_cauchy Standard Cauchy-Lorentz distribution.
standard_exponential Standard exponential distribution.
standard_gamma Standard Gamma distribution.
standard_normal Standard normal distribution.
standard_t Standard Student's t-distribution.
==================== =========================================================
==================== =========================================================
Internal functions
-------------------- ---------------------------------------------------------
get_state Get tuple representing internal state of generator.
set_state Set state of generator.
==================== =========================================================
"""
__all__ = [
'beta',
'binomial',
'bytes',
'chisquare',
'choice',
'dirichlet',
'exponential',
'f',
'gamma',
'geometric',
'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_state',
'shuffle',
'standard_cauchy',
'standard_exponential',
'standard_gamma',
'standard_normal',
'standard_t',
'triangular',
'uniform',
'vonmises',
'wald',
'weibull',
'zipf',
]
# add these for module-freeze analysis (like PyInstaller)
from . import _pickle
from . import _common
from . import _bounded_integers
from ._generator import Generator, default_rng
from .bit_generator import SeedSequence, BitGenerator
from ._mt19937 import MT19937
from ._pcg64 import PCG64, PCG64DXSM
from ._philox import Philox
from ._sfc64 import SFC64
from .mtrand import *
__all__ += ['Generator', 'RandomState', 'SeedSequence', 'MT19937',
'Philox', 'PCG64', 'PCG64DXSM', 'SFC64', 'default_rng',
'BitGenerator']
def __RandomState_ctor():
"""Return a RandomState instance.
This function exists solely to assist (un)pickling.
Note that the state of the RandomState returned here is irrelevant, as this
function's entire purpose is to return a newly allocated RandomState whose
state pickle can set. Consequently the RandomState returned by this function
is a freshly allocated copy with a seed=0.
See https://github.com/numpy/numpy/issues/4763 for a detailed discussion
"""
return RandomState(seed=0)
from numpy._pytesttester import PytestTester
test = PytestTester(__name__)
del PytestTester
|