mirror of
				https://github.com/python/cpython.git
				synced 2025-10-31 21:51:50 +00:00 
			
		
		
		
	
		
			
				
	
	
		
			996 lines
		
	
	
	
		
			34 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
			
		
		
	
	
			996 lines
		
	
	
	
		
			34 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
| """Random variable generators.
 | |
| 
 | |
|     bytes
 | |
|     -----
 | |
|            uniform bytes (values between 0 and 255)
 | |
| 
 | |
|     integers
 | |
|     --------
 | |
|            uniform within range
 | |
| 
 | |
|     sequences
 | |
|     ---------
 | |
|            pick random element
 | |
|            pick random sample
 | |
|            pick weighted random sample
 | |
|            generate random permutation
 | |
| 
 | |
|     distributions on the real line:
 | |
|     ------------------------------
 | |
|            uniform
 | |
|            triangular
 | |
|            normal (Gaussian)
 | |
|            lognormal
 | |
|            negative exponential
 | |
|            gamma
 | |
|            beta
 | |
|            pareto
 | |
|            Weibull
 | |
| 
 | |
|     distributions on the circle (angles 0 to 2pi)
 | |
|     ---------------------------------------------
 | |
|            circular uniform
 | |
|            von Mises
 | |
| 
 | |
|     discrete distributions
 | |
|     ----------------------
 | |
|            binomial
 | |
| 
 | |
| 
 | |
| General notes on the underlying Mersenne Twister core generator:
 | |
| 
 | |
| * The period is 2**19937-1.
 | |
| * It is one of the most extensively tested generators in existence.
 | |
| * The random() method is implemented in C, executes in a single Python step,
 | |
|   and is, therefore, threadsafe.
 | |
| 
 | |
| """
 | |
| 
 | |
| # Translated by Guido van Rossum from C source provided by
 | |
| # Adrian Baddeley.  Adapted by Raymond Hettinger for use with
 | |
| # the Mersenne Twister  and os.urandom() core generators.
 | |
| 
 | |
| from warnings import warn as _warn
 | |
| from math import log as _log, exp as _exp, pi as _pi, e as _e, ceil as _ceil
 | |
| from math import sqrt as _sqrt, acos as _acos, cos as _cos, sin as _sin
 | |
| from math import tau as TWOPI, floor as _floor, isfinite as _isfinite
 | |
| from math import lgamma as _lgamma, fabs as _fabs, log2 as _log2
 | |
| from os import urandom as _urandom
 | |
| from _collections_abc import Sequence as _Sequence
 | |
| from operator import index as _index
 | |
| from itertools import accumulate as _accumulate, repeat as _repeat
 | |
| from bisect import bisect as _bisect
 | |
| import os as _os
 | |
| import _random
 | |
| 
 | |
| try:
 | |
|     # hashlib is pretty heavy to load, try lean internal module first
 | |
|     from _sha512 import sha512 as _sha512
 | |
| except ImportError:
 | |
|     # fallback to official implementation
 | |
|     from hashlib import sha512 as _sha512
 | |
| 
 | |
| __all__ = [
 | |
|     "Random",
 | |
|     "SystemRandom",
 | |
|     "betavariate",
 | |
|     "binomialvariate",
 | |
|     "choice",
 | |
|     "choices",
 | |
|     "expovariate",
 | |
|     "gammavariate",
 | |
|     "gauss",
 | |
|     "getrandbits",
 | |
|     "getstate",
 | |
|     "lognormvariate",
 | |
|     "normalvariate",
 | |
|     "paretovariate",
 | |
|     "randbytes",
 | |
|     "randint",
 | |
|     "random",
 | |
|     "randrange",
 | |
|     "sample",
 | |
|     "seed",
 | |
|     "setstate",
 | |
|     "shuffle",
 | |
|     "triangular",
 | |
|     "uniform",
 | |
|     "vonmisesvariate",
 | |
|     "weibullvariate",
 | |
| ]
 | |
| 
 | |
| NV_MAGICCONST = 4 * _exp(-0.5) / _sqrt(2.0)
 | |
| LOG4 = _log(4.0)
 | |
| SG_MAGICCONST = 1.0 + _log(4.5)
 | |
| BPF = 53        # Number of bits in a float
 | |
| RECIP_BPF = 2 ** -BPF
 | |
| _ONE = 1
 | |
| 
 | |
| 
 | |
| class Random(_random.Random):
 | |
|     """Random number generator base class used by bound module functions.
 | |
| 
 | |
|     Used to instantiate instances of Random to get generators that don't
 | |
|     share state.
 | |
| 
 | |
|     Class Random can also be subclassed if you want to use a different basic
 | |
|     generator of your own devising: in that case, override the following
 | |
|     methods:  random(), seed(), getstate(), and setstate().
 | |
|     Optionally, implement a getrandbits() method so that randrange()
 | |
|     can cover arbitrarily large ranges.
 | |
| 
 | |
|     """
 | |
| 
 | |
|     VERSION = 3     # used by getstate/setstate
 | |
| 
 | |
|     def __init__(self, x=None):
 | |
|         """Initialize an instance.
 | |
| 
 | |
|         Optional argument x controls seeding, as for Random.seed().
 | |
|         """
 | |
| 
 | |
|         self.seed(x)
 | |
|         self.gauss_next = None
 | |
| 
 | |
|     def seed(self, a=None, version=2):
 | |
|         """Initialize internal state from a seed.
 | |
| 
 | |
|         The only supported seed types are None, int, float,
 | |
|         str, bytes, and bytearray.
 | |
| 
 | |
|         None or no argument seeds from current time or from an operating
 | |
|         system specific randomness source if available.
 | |
| 
 | |
|         If *a* is an int, all bits are used.
 | |
| 
 | |
|         For version 2 (the default), all of the bits are used if *a* is a str,
 | |
|         bytes, or bytearray.  For version 1 (provided for reproducing random
 | |
|         sequences from older versions of Python), the algorithm for str and
 | |
|         bytes generates a narrower range of seeds.
 | |
| 
 | |
|         """
 | |
| 
 | |
|         if version == 1 and isinstance(a, (str, bytes)):
 | |
|             a = a.decode('latin-1') if isinstance(a, bytes) else a
 | |
|             x = ord(a[0]) << 7 if a else 0
 | |
|             for c in map(ord, a):
 | |
|                 x = ((1000003 * x) ^ c) & 0xFFFFFFFFFFFFFFFF
 | |
|             x ^= len(a)
 | |
|             a = -2 if x == -1 else x
 | |
| 
 | |
|         elif version == 2 and isinstance(a, (str, bytes, bytearray)):
 | |
|             if isinstance(a, str):
 | |
|                 a = a.encode()
 | |
|             a = int.from_bytes(a + _sha512(a).digest())
 | |
| 
 | |
|         elif not isinstance(a, (type(None), int, float, str, bytes, bytearray)):
 | |
|             raise TypeError('The only supported seed types are: None,\n'
 | |
|                             'int, float, str, bytes, and bytearray.')
 | |
| 
 | |
|         super().seed(a)
 | |
|         self.gauss_next = None
 | |
| 
 | |
|     def getstate(self):
 | |
|         """Return internal state; can be passed to setstate() later."""
 | |
|         return self.VERSION, super().getstate(), self.gauss_next
 | |
| 
 | |
|     def setstate(self, state):
 | |
|         """Restore internal state from object returned by getstate()."""
 | |
|         version = state[0]
 | |
|         if version == 3:
 | |
|             version, internalstate, self.gauss_next = state
 | |
|             super().setstate(internalstate)
 | |
|         elif version == 2:
 | |
|             version, internalstate, self.gauss_next = state
 | |
|             # In version 2, the state was saved as signed ints, which causes
 | |
|             #   inconsistencies between 32/64-bit systems. The state is
 | |
|             #   really unsigned 32-bit ints, so we convert negative ints from
 | |
|             #   version 2 to positive longs for version 3.
 | |
|             try:
 | |
|                 internalstate = tuple(x % (2 ** 32) for x in internalstate)
 | |
|             except ValueError as e:
 | |
|                 raise TypeError from e
 | |
|             super().setstate(internalstate)
 | |
|         else:
 | |
|             raise ValueError("state with version %s passed to "
 | |
|                              "Random.setstate() of version %s" %
 | |
|                              (version, self.VERSION))
 | |
| 
 | |
| 
 | |
|     ## -------------------------------------------------------
 | |
|     ## ---- Methods below this point do not need to be overridden or extended
 | |
|     ## ---- when subclassing for the purpose of using a different core generator.
 | |
| 
 | |
| 
 | |
|     ## -------------------- pickle support  -------------------
 | |
| 
 | |
|     # Issue 17489: Since __reduce__ was defined to fix #759889 this is no
 | |
|     # longer called; we leave it here because it has been here since random was
 | |
|     # rewritten back in 2001 and why risk breaking something.
 | |
|     def __getstate__(self):  # for pickle
 | |
|         return self.getstate()
 | |
| 
 | |
|     def __setstate__(self, state):  # for pickle
 | |
|         self.setstate(state)
 | |
| 
 | |
|     def __reduce__(self):
 | |
|         return self.__class__, (), self.getstate()
 | |
| 
 | |
| 
 | |
|     ## ---- internal support method for evenly distributed integers ----
 | |
| 
 | |
|     def __init_subclass__(cls, /, **kwargs):
 | |
|         """Control how subclasses generate random integers.
 | |
| 
 | |
|         The algorithm a subclass can use depends on the random() and/or
 | |
|         getrandbits() implementation available to it and determines
 | |
|         whether it can generate random integers from arbitrarily large
 | |
|         ranges.
 | |
|         """
 | |
| 
 | |
|         for c in cls.__mro__:
 | |
|             if '_randbelow' in c.__dict__:
 | |
|                 # just inherit it
 | |
|                 break
 | |
|             if 'getrandbits' in c.__dict__:
 | |
|                 cls._randbelow = cls._randbelow_with_getrandbits
 | |
|                 break
 | |
|             if 'random' in c.__dict__:
 | |
|                 cls._randbelow = cls._randbelow_without_getrandbits
 | |
|                 break
 | |
| 
 | |
|     def _randbelow_with_getrandbits(self, n):
 | |
|         "Return a random int in the range [0,n).  Defined for n > 0."
 | |
| 
 | |
|         getrandbits = self.getrandbits
 | |
|         k = n.bit_length()
 | |
|         r = getrandbits(k)  # 0 <= r < 2**k
 | |
|         while r >= n:
 | |
|             r = getrandbits(k)
 | |
|         return r
 | |
| 
 | |
|     def _randbelow_without_getrandbits(self, n, maxsize=1<<BPF):
 | |
|         """Return a random int in the range [0,n).  Defined for n > 0.
 | |
| 
 | |
|         The implementation does not use getrandbits, but only random.
 | |
|         """
 | |
| 
 | |
|         random = self.random
 | |
|         if n >= maxsize:
 | |
|             _warn("Underlying random() generator does not supply \n"
 | |
|                 "enough bits to choose from a population range this large.\n"
 | |
|                 "To remove the range limitation, add a getrandbits() method.")
 | |
|             return _floor(random() * n)
 | |
|         rem = maxsize % n
 | |
|         limit = (maxsize - rem) / maxsize   # int(limit * maxsize) % n == 0
 | |
|         r = random()
 | |
|         while r >= limit:
 | |
|             r = random()
 | |
|         return _floor(r * maxsize) % n
 | |
| 
 | |
|     _randbelow = _randbelow_with_getrandbits
 | |
| 
 | |
| 
 | |
|     ## --------------------------------------------------------
 | |
|     ## ---- Methods below this point generate custom distributions
 | |
|     ## ---- based on the methods defined above.  They do not
 | |
|     ## ---- directly touch the underlying generator and only
 | |
|     ## ---- access randomness through the methods:  random(),
 | |
|     ## ---- getrandbits(), or _randbelow().
 | |
| 
 | |
| 
 | |
|     ## -------------------- bytes methods ---------------------
 | |
| 
 | |
|     def randbytes(self, n):
 | |
|         """Generate n random bytes."""
 | |
|         return self.getrandbits(n * 8).to_bytes(n, 'little')
 | |
| 
 | |
| 
 | |
|     ## -------------------- integer methods  -------------------
 | |
| 
 | |
|     def randrange(self, start, stop=None, step=_ONE):
 | |
|         """Choose a random item from range(stop) or range(start, stop[, step]).
 | |
| 
 | |
|         Roughly equivalent to ``choice(range(start, stop, step))`` but
 | |
|         supports arbitrarily large ranges and is optimized for common cases.
 | |
| 
 | |
|         """
 | |
| 
 | |
|         # This code is a bit messy to make it fast for the
 | |
|         # common case while still doing adequate error checking.
 | |
|         istart = _index(start)
 | |
|         if stop is None:
 | |
|             # We don't check for "step != 1" because it hasn't been
 | |
|             # type checked and converted to an integer yet.
 | |
|             if step is not _ONE:
 | |
|                 raise TypeError("Missing a non-None stop argument")
 | |
|             if istart > 0:
 | |
|                 return self._randbelow(istart)
 | |
|             raise ValueError("empty range for randrange()")
 | |
| 
 | |
|         # Stop argument supplied.
 | |
|         istop = _index(stop)
 | |
|         width = istop - istart
 | |
|         istep = _index(step)
 | |
|         # Fast path.
 | |
|         if istep == 1:
 | |
|             if width > 0:
 | |
|                 return istart + self._randbelow(width)
 | |
|             raise ValueError(f"empty range in randrange({start}, {stop})")
 | |
| 
 | |
|         # Non-unit step argument supplied.
 | |
|         if istep > 0:
 | |
|             n = (width + istep - 1) // istep
 | |
|         elif istep < 0:
 | |
|             n = (width + istep + 1) // istep
 | |
|         else:
 | |
|             raise ValueError("zero step for randrange()")
 | |
|         if n <= 0:
 | |
|             raise ValueError(f"empty range in randrange({start}, {stop}, {step})")
 | |
|         return istart + istep * self._randbelow(n)
 | |
| 
 | |
|     def randint(self, a, b):
 | |
|         """Return random integer in range [a, b], including both end points.
 | |
|         """
 | |
| 
 | |
|         return self.randrange(a, b+1)
 | |
| 
 | |
| 
 | |
|     ## -------------------- sequence methods  -------------------
 | |
| 
 | |
|     def choice(self, seq):
 | |
|         """Choose a random element from a non-empty sequence."""
 | |
| 
 | |
|         # As an accommodation for NumPy, we don't use "if not seq"
 | |
|         # because bool(numpy.array()) raises a ValueError.
 | |
|         if not len(seq):
 | |
|             raise IndexError('Cannot choose from an empty sequence')
 | |
|         return seq[self._randbelow(len(seq))]
 | |
| 
 | |
|     def shuffle(self, x):
 | |
|         """Shuffle list x in place, and return None."""
 | |
| 
 | |
|         randbelow = self._randbelow
 | |
|         for i in reversed(range(1, len(x))):
 | |
|             # pick an element in x[:i+1] with which to exchange x[i]
 | |
|             j = randbelow(i + 1)
 | |
|             x[i], x[j] = x[j], x[i]
 | |
| 
 | |
|     def sample(self, population, k, *, counts=None):
 | |
|         """Chooses k unique random elements from a population sequence.
 | |
| 
 | |
|         Returns a new list containing elements from the population while
 | |
|         leaving the original population unchanged.  The resulting list is
 | |
|         in selection order so that all sub-slices will also be valid random
 | |
|         samples.  This allows raffle winners (the sample) to be partitioned
 | |
|         into grand prize and second place winners (the subslices).
 | |
| 
 | |
|         Members of the population need not be hashable or unique.  If the
 | |
|         population contains repeats, then each occurrence is a possible
 | |
|         selection in the sample.
 | |
| 
 | |
|         Repeated elements can be specified one at a time or with the optional
 | |
|         counts parameter.  For example:
 | |
| 
 | |
|             sample(['red', 'blue'], counts=[4, 2], k=5)
 | |
| 
 | |
|         is equivalent to:
 | |
| 
 | |
|             sample(['red', 'red', 'red', 'red', 'blue', 'blue'], k=5)
 | |
| 
 | |
|         To choose a sample from a range of integers, use range() for the
 | |
|         population argument.  This is especially fast and space efficient
 | |
|         for sampling from a large population:
 | |
| 
 | |
|             sample(range(10000000), 60)
 | |
| 
 | |
|         """
 | |
| 
 | |
|         # Sampling without replacement entails tracking either potential
 | |
|         # selections (the pool) in a list or previous selections in a set.
 | |
| 
 | |
|         # When the number of selections is small compared to the
 | |
|         # population, then tracking selections is efficient, requiring
 | |
|         # only a small set and an occasional reselection.  For
 | |
|         # a larger number of selections, the pool tracking method is
 | |
|         # preferred since the list takes less space than the
 | |
|         # set and it doesn't suffer from frequent reselections.
 | |
| 
 | |
|         # The number of calls to _randbelow() is kept at or near k, the
 | |
|         # theoretical minimum.  This is important because running time
 | |
|         # is dominated by _randbelow() and because it extracts the
 | |
|         # least entropy from the underlying random number generators.
 | |
| 
 | |
|         # Memory requirements are kept to the smaller of a k-length
 | |
|         # set or an n-length list.
 | |
| 
 | |
|         # There are other sampling algorithms that do not require
 | |
|         # auxiliary memory, but they were rejected because they made
 | |
|         # too many calls to _randbelow(), making them slower and
 | |
|         # causing them to eat more entropy than necessary.
 | |
| 
 | |
|         if not isinstance(population, _Sequence):
 | |
|             raise TypeError("Population must be a sequence.  "
 | |
|                             "For dicts or sets, use sorted(d).")
 | |
|         n = len(population)
 | |
|         if counts is not None:
 | |
|             cum_counts = list(_accumulate(counts))
 | |
|             if len(cum_counts) != n:
 | |
|                 raise ValueError('The number of counts does not match the population')
 | |
|             total = cum_counts.pop()
 | |
|             if not isinstance(total, int):
 | |
|                 raise TypeError('Counts must be integers')
 | |
|             if total <= 0:
 | |
|                 raise ValueError('Total of counts must be greater than zero')
 | |
|             selections = self.sample(range(total), k=k)
 | |
|             bisect = _bisect
 | |
|             return [population[bisect(cum_counts, s)] for s in selections]
 | |
|         randbelow = self._randbelow
 | |
|         if not 0 <= k <= n:
 | |
|             raise ValueError("Sample larger than population or is negative")
 | |
|         result = [None] * k
 | |
|         setsize = 21        # size of a small set minus size of an empty list
 | |
|         if k > 5:
 | |
|             setsize += 4 ** _ceil(_log(k * 3, 4))  # table size for big sets
 | |
|         if n <= setsize:
 | |
|             # An n-length list is smaller than a k-length set.
 | |
|             # Invariant:  non-selected at pool[0 : n-i]
 | |
|             pool = list(population)
 | |
|             for i in range(k):
 | |
|                 j = randbelow(n - i)
 | |
|                 result[i] = pool[j]
 | |
|                 pool[j] = pool[n - i - 1]  # move non-selected item into vacancy
 | |
|         else:
 | |
|             selected = set()
 | |
|             selected_add = selected.add
 | |
|             for i in range(k):
 | |
|                 j = randbelow(n)
 | |
|                 while j in selected:
 | |
|                     j = randbelow(n)
 | |
|                 selected_add(j)
 | |
|                 result[i] = population[j]
 | |
|         return result
 | |
| 
 | |
|     def choices(self, population, weights=None, *, cum_weights=None, k=1):
 | |
|         """Return a k sized list of population elements chosen with replacement.
 | |
| 
 | |
|         If the relative weights or cumulative weights are not specified,
 | |
|         the selections are made with equal probability.
 | |
| 
 | |
|         """
 | |
|         random = self.random
 | |
|         n = len(population)
 | |
|         if cum_weights is None:
 | |
|             if weights is None:
 | |
|                 floor = _floor
 | |
|                 n += 0.0    # convert to float for a small speed improvement
 | |
|                 return [population[floor(random() * n)] for i in _repeat(None, k)]
 | |
|             try:
 | |
|                 cum_weights = list(_accumulate(weights))
 | |
|             except TypeError:
 | |
|                 if not isinstance(weights, int):
 | |
|                     raise
 | |
|                 k = weights
 | |
|                 raise TypeError(
 | |
|                     f'The number of choices must be a keyword argument: {k=}'
 | |
|                 ) from None
 | |
|         elif weights is not None:
 | |
|             raise TypeError('Cannot specify both weights and cumulative weights')
 | |
|         if len(cum_weights) != n:
 | |
|             raise ValueError('The number of weights does not match the population')
 | |
|         total = cum_weights[-1] + 0.0   # convert to float
 | |
|         if total <= 0.0:
 | |
|             raise ValueError('Total of weights must be greater than zero')
 | |
|         if not _isfinite(total):
 | |
|             raise ValueError('Total of weights must be finite')
 | |
|         bisect = _bisect
 | |
|         hi = n - 1
 | |
|         return [population[bisect(cum_weights, random() * total, 0, hi)]
 | |
|                 for i in _repeat(None, k)]
 | |
| 
 | |
| 
 | |
|     ## -------------------- real-valued distributions  -------------------
 | |
| 
 | |
|     def uniform(self, a, b):
 | |
|         """Get a random number in the range [a, b) or [a, b] depending on rounding.
 | |
| 
 | |
|         The mean (expected value) and variance of the random variable are:
 | |
| 
 | |
|             E[X] = (a + b) / 2
 | |
|             Var[X] = (b - a) ** 2 / 12
 | |
| 
 | |
|         """
 | |
|         return a + (b - a) * self.random()
 | |
| 
 | |
|     def triangular(self, low=0.0, high=1.0, mode=None):
 | |
|         """Triangular distribution.
 | |
| 
 | |
|         Continuous distribution bounded by given lower and upper limits,
 | |
|         and having a given mode value in-between.
 | |
| 
 | |
|         http://en.wikipedia.org/wiki/Triangular_distribution
 | |
| 
 | |
|         The mean (expected value) and variance of the random variable are:
 | |
| 
 | |
|             E[X] = (low + high + mode) / 3
 | |
|             Var[X] = (low**2 + high**2 + mode**2 - low*high - low*mode - high*mode) / 18
 | |
| 
 | |
|         """
 | |
|         u = self.random()
 | |
|         try:
 | |
|             c = 0.5 if mode is None else (mode - low) / (high - low)
 | |
|         except ZeroDivisionError:
 | |
|             return low
 | |
|         if u > c:
 | |
|             u = 1.0 - u
 | |
|             c = 1.0 - c
 | |
|             low, high = high, low
 | |
|         return low + (high - low) * _sqrt(u * c)
 | |
| 
 | |
|     def normalvariate(self, mu=0.0, sigma=1.0):
 | |
|         """Normal distribution.
 | |
| 
 | |
|         mu is the mean, and sigma is the standard deviation.
 | |
| 
 | |
|         """
 | |
|         # Uses Kinderman and Monahan method. Reference: Kinderman,
 | |
|         # A.J. and Monahan, J.F., "Computer generation of random
 | |
|         # variables using the ratio of uniform deviates", ACM Trans
 | |
|         # Math Software, 3, (1977), pp257-260.
 | |
| 
 | |
|         random = self.random
 | |
|         while True:
 | |
|             u1 = random()
 | |
|             u2 = 1.0 - random()
 | |
|             z = NV_MAGICCONST * (u1 - 0.5) / u2
 | |
|             zz = z * z / 4.0
 | |
|             if zz <= -_log(u2):
 | |
|                 break
 | |
|         return mu + z * sigma
 | |
| 
 | |
|     def gauss(self, mu=0.0, sigma=1.0):
 | |
|         """Gaussian distribution.
 | |
| 
 | |
|         mu is the mean, and sigma is the standard deviation.  This is
 | |
|         slightly faster than the normalvariate() function.
 | |
| 
 | |
|         Not thread-safe without a lock around calls.
 | |
| 
 | |
|         """
 | |
|         # When x and y are two variables from [0, 1), uniformly
 | |
|         # distributed, then
 | |
|         #
 | |
|         #    cos(2*pi*x)*sqrt(-2*log(1-y))
 | |
|         #    sin(2*pi*x)*sqrt(-2*log(1-y))
 | |
|         #
 | |
|         # are two *independent* variables with normal distribution
 | |
|         # (mu = 0, sigma = 1).
 | |
|         # (Lambert Meertens)
 | |
|         # (corrected version; bug discovered by Mike Miller, fixed by LM)
 | |
| 
 | |
|         # Multithreading note: When two threads call this function
 | |
|         # simultaneously, it is possible that they will receive the
 | |
|         # same return value.  The window is very small though.  To
 | |
|         # avoid this, you have to use a lock around all calls.  (I
 | |
|         # didn't want to slow this down in the serial case by using a
 | |
|         # lock here.)
 | |
| 
 | |
|         random = self.random
 | |
|         z = self.gauss_next
 | |
|         self.gauss_next = None
 | |
|         if z is None:
 | |
|             x2pi = random() * TWOPI
 | |
|             g2rad = _sqrt(-2.0 * _log(1.0 - random()))
 | |
|             z = _cos(x2pi) * g2rad
 | |
|             self.gauss_next = _sin(x2pi) * g2rad
 | |
| 
 | |
|         return mu + z * sigma
 | |
| 
 | |
|     def lognormvariate(self, mu, sigma):
 | |
|         """Log normal distribution.
 | |
| 
 | |
|         If you take the natural logarithm of this distribution, you'll get a
 | |
|         normal distribution with mean mu and standard deviation sigma.
 | |
|         mu can have any value, and sigma must be greater than zero.
 | |
| 
 | |
|         """
 | |
|         return _exp(self.normalvariate(mu, sigma))
 | |
| 
 | |
|     def expovariate(self, lambd=1.0):
 | |
|         """Exponential distribution.
 | |
| 
 | |
|         lambd is 1.0 divided by the desired mean.  It should be
 | |
|         nonzero.  (The parameter would be called "lambda", but that is
 | |
|         a reserved word in Python.)  Returned values range from 0 to
 | |
|         positive infinity if lambd is positive, and from negative
 | |
|         infinity to 0 if lambd is negative.
 | |
| 
 | |
|         The mean (expected value) and variance of the random variable are:
 | |
| 
 | |
|             E[X] = 1 / lambd
 | |
|             Var[X] = 1 / lambd ** 2
 | |
| 
 | |
|         """
 | |
|         # we use 1-random() instead of random() to preclude the
 | |
|         # possibility of taking the log of zero.
 | |
| 
 | |
|         return -_log(1.0 - self.random()) / lambd
 | |
| 
 | |
|     def vonmisesvariate(self, mu, kappa):
 | |
|         """Circular data distribution.
 | |
| 
 | |
|         mu is the mean angle, expressed in radians between 0 and 2*pi, and
 | |
|         kappa is the concentration parameter, which must be greater than or
 | |
|         equal to zero.  If kappa is equal to zero, this distribution reduces
 | |
|         to a uniform random angle over the range 0 to 2*pi.
 | |
| 
 | |
|         """
 | |
|         # Based upon an algorithm published in: Fisher, N.I.,
 | |
|         # "Statistical Analysis of Circular Data", Cambridge
 | |
|         # University Press, 1993.
 | |
| 
 | |
|         # Thanks to Magnus Kessler for a correction to the
 | |
|         # implementation of step 4.
 | |
| 
 | |
|         random = self.random
 | |
|         if kappa <= 1e-6:
 | |
|             return TWOPI * random()
 | |
| 
 | |
|         s = 0.5 / kappa
 | |
|         r = s + _sqrt(1.0 + s * s)
 | |
| 
 | |
|         while True:
 | |
|             u1 = random()
 | |
|             z = _cos(_pi * u1)
 | |
| 
 | |
|             d = z / (r + z)
 | |
|             u2 = random()
 | |
|             if u2 < 1.0 - d * d or u2 <= (1.0 - d) * _exp(d):
 | |
|                 break
 | |
| 
 | |
|         q = 1.0 / r
 | |
|         f = (q + z) / (1.0 + q * z)
 | |
|         u3 = random()
 | |
|         if u3 > 0.5:
 | |
|             theta = (mu + _acos(f)) % TWOPI
 | |
|         else:
 | |
|             theta = (mu - _acos(f)) % TWOPI
 | |
| 
 | |
|         return theta
 | |
| 
 | |
|     def gammavariate(self, alpha, beta):
 | |
|         """Gamma distribution.  Not the gamma function!
 | |
| 
 | |
|         Conditions on the parameters are alpha > 0 and beta > 0.
 | |
| 
 | |
|         The probability distribution function is:
 | |
| 
 | |
|                     x ** (alpha - 1) * math.exp(-x / beta)
 | |
|           pdf(x) =  --------------------------------------
 | |
|                       math.gamma(alpha) * beta ** alpha
 | |
| 
 | |
|         The mean (expected value) and variance of the random variable are:
 | |
| 
 | |
|             E[X] = alpha * beta
 | |
|             Var[X] = alpha * beta ** 2
 | |
| 
 | |
|         """
 | |
| 
 | |
|         # Warning: a few older sources define the gamma distribution in terms
 | |
|         # of alpha > -1.0
 | |
|         if alpha <= 0.0 or beta <= 0.0:
 | |
|             raise ValueError('gammavariate: alpha and beta must be > 0.0')
 | |
| 
 | |
|         random = self.random
 | |
|         if alpha > 1.0:
 | |
| 
 | |
|             # Uses R.C.H. Cheng, "The generation of Gamma
 | |
|             # variables with non-integral shape parameters",
 | |
|             # Applied Statistics, (1977), 26, No. 1, p71-74
 | |
| 
 | |
|             ainv = _sqrt(2.0 * alpha - 1.0)
 | |
|             bbb = alpha - LOG4
 | |
|             ccc = alpha + ainv
 | |
| 
 | |
|             while True:
 | |
|                 u1 = random()
 | |
|                 if not 1e-7 < u1 < 0.9999999:
 | |
|                     continue
 | |
|                 u2 = 1.0 - random()
 | |
|                 v = _log(u1 / (1.0 - u1)) / ainv
 | |
|                 x = alpha * _exp(v)
 | |
|                 z = u1 * u1 * u2
 | |
|                 r = bbb + ccc * v - x
 | |
|                 if r + SG_MAGICCONST - 4.5 * z >= 0.0 or r >= _log(z):
 | |
|                     return x * beta
 | |
| 
 | |
|         elif alpha == 1.0:
 | |
|             # expovariate(1/beta)
 | |
|             return -_log(1.0 - random()) * beta
 | |
| 
 | |
|         else:
 | |
|             # alpha is between 0 and 1 (exclusive)
 | |
|             # Uses ALGORITHM GS of Statistical Computing - Kennedy & Gentle
 | |
|             while True:
 | |
|                 u = random()
 | |
|                 b = (_e + alpha) / _e
 | |
|                 p = b * u
 | |
|                 if p <= 1.0:
 | |
|                     x = p ** (1.0 / alpha)
 | |
|                 else:
 | |
|                     x = -_log((b - p) / alpha)
 | |
|                 u1 = random()
 | |
|                 if p > 1.0:
 | |
|                     if u1 <= x ** (alpha - 1.0):
 | |
|                         break
 | |
|                 elif u1 <= _exp(-x):
 | |
|                     break
 | |
|             return x * beta
 | |
| 
 | |
|     def betavariate(self, alpha, beta):
 | |
|         """Beta distribution.
 | |
| 
 | |
|         Conditions on the parameters are alpha > 0 and beta > 0.
 | |
|         Returned values range between 0 and 1.
 | |
| 
 | |
|         The mean (expected value) and variance of the random variable are:
 | |
| 
 | |
|             E[X] = alpha / (alpha + beta)
 | |
|             Var[X] = alpha * beta / ((alpha + beta)**2 * (alpha + beta + 1))
 | |
| 
 | |
|         """
 | |
|         ## See
 | |
|         ## http://mail.python.org/pipermail/python-bugs-list/2001-January/003752.html
 | |
|         ## for Ivan Frohne's insightful analysis of why the original implementation:
 | |
|         ##
 | |
|         ##    def betavariate(self, alpha, beta):
 | |
|         ##        # Discrete Event Simulation in C, pp 87-88.
 | |
|         ##
 | |
|         ##        y = self.expovariate(alpha)
 | |
|         ##        z = self.expovariate(1.0/beta)
 | |
|         ##        return z/(y+z)
 | |
|         ##
 | |
|         ## was dead wrong, and how it probably got that way.
 | |
| 
 | |
|         # This version due to Janne Sinkkonen, and matches all the std
 | |
|         # texts (e.g., Knuth Vol 2 Ed 3 pg 134 "the beta distribution").
 | |
|         y = self.gammavariate(alpha, 1.0)
 | |
|         if y:
 | |
|             return y / (y + self.gammavariate(beta, 1.0))
 | |
|         return 0.0
 | |
| 
 | |
|     def paretovariate(self, alpha):
 | |
|         """Pareto distribution.  alpha is the shape parameter."""
 | |
|         # Jain, pg. 495
 | |
| 
 | |
|         u = 1.0 - self.random()
 | |
|         return u ** (-1.0 / alpha)
 | |
| 
 | |
|     def weibullvariate(self, alpha, beta):
 | |
|         """Weibull distribution.
 | |
| 
 | |
|         alpha is the scale parameter and beta is the shape parameter.
 | |
| 
 | |
|         """
 | |
|         # Jain, pg. 499; bug fix courtesy Bill Arms
 | |
| 
 | |
|         u = 1.0 - self.random()
 | |
|         return alpha * (-_log(u)) ** (1.0 / beta)
 | |
| 
 | |
| 
 | |
|     ## -------------------- discrete  distributions  ---------------------
 | |
| 
 | |
|     def binomialvariate(self, n=1, p=0.5):
 | |
|         """Binomial random variable.
 | |
| 
 | |
|         Gives the number of successes for *n* independent trials
 | |
|         with the probability of success in each trial being *p*:
 | |
| 
 | |
|             sum(random() < p for i in range(n))
 | |
| 
 | |
|         Returns an integer in the range:   0 <= X <= n
 | |
| 
 | |
|         The mean (expected value) and variance of the random variable are:
 | |
| 
 | |
|             E[X] = n * p
 | |
|             Var[x] = n * p * (1 - p)
 | |
| 
 | |
|         """
 | |
|         # Error check inputs and handle edge cases
 | |
|         if n < 0:
 | |
|             raise ValueError("n must be non-negative")
 | |
|         if p <= 0.0 or p >= 1.0:
 | |
|             if p == 0.0:
 | |
|                 return 0
 | |
|             if p == 1.0:
 | |
|                 return n
 | |
|             raise ValueError("p must be in the range 0.0 <= p <= 1.0")
 | |
| 
 | |
|         random = self.random
 | |
| 
 | |
|         # Fast path for a common case
 | |
|         if n == 1:
 | |
|             return _index(random() < p)
 | |
| 
 | |
|         # Exploit symmetry to establish:  p <= 0.5
 | |
|         if p > 0.5:
 | |
|             return n - self.binomialvariate(n, 1.0 - p)
 | |
| 
 | |
|         if n * p < 10.0:
 | |
|             # BG: Geometric method by Devroye with running time of O(np).
 | |
|             # https://dl.acm.org/doi/pdf/10.1145/42372.42381
 | |
|             x = y = 0
 | |
|             c = _log2(1.0 - p)
 | |
|             if not c:
 | |
|                 return x
 | |
|             while True:
 | |
|                 y += _floor(_log2(random()) / c) + 1
 | |
|                 if y > n:
 | |
|                     return x
 | |
|                 x += 1
 | |
| 
 | |
|         # BTRS: Transformed rejection with squeeze method by Wolfgang Hörmann
 | |
|         # https://citeseerx.ist.psu.edu/viewdoc/download?doi=10.1.1.47.8407&rep=rep1&type=pdf
 | |
|         assert n*p >= 10.0 and p <= 0.5
 | |
|         setup_complete = False
 | |
| 
 | |
|         spq = _sqrt(n * p * (1.0 - p))  # Standard deviation of the distribution
 | |
|         b = 1.15 + 2.53 * spq
 | |
|         a = -0.0873 + 0.0248 * b + 0.01 * p
 | |
|         c = n * p + 0.5
 | |
|         vr = 0.92 - 4.2 / b
 | |
| 
 | |
|         while True:
 | |
| 
 | |
|             u = random()
 | |
|             u -= 0.5
 | |
|             us = 0.5 - _fabs(u)
 | |
|             k = _floor((2.0 * a / us + b) * u + c)
 | |
|             if k < 0 or k > n:
 | |
|                 continue
 | |
| 
 | |
|             # The early-out "squeeze" test substantially reduces
 | |
|             # the number of acceptance condition evaluations.
 | |
|             v = random()
 | |
|             if us >= 0.07 and v <= vr:
 | |
|                 return k
 | |
| 
 | |
|             # Acceptance-rejection test.
 | |
|             # Note, the original paper erroneously omits the call to log(v)
 | |
|             # when comparing to the log of the rescaled binomial distribution.
 | |
|             if not setup_complete:
 | |
|                 alpha = (2.83 + 5.1 / b) * spq
 | |
|                 lpq = _log(p / (1.0 - p))
 | |
|                 m = _floor((n + 1) * p)         # Mode of the distribution
 | |
|                 h = _lgamma(m + 1) + _lgamma(n - m + 1)
 | |
|                 setup_complete = True           # Only needs to be done once
 | |
|             v *= alpha / (a / (us * us) + b)
 | |
|             if _log(v) <= h - _lgamma(k + 1) - _lgamma(n - k + 1) + (k - m) * lpq:
 | |
|                 return k
 | |
| 
 | |
| 
 | |
| ## ------------------------------------------------------------------
 | |
| ## --------------- Operating System Random Source  ------------------
 | |
| 
 | |
| 
 | |
| class SystemRandom(Random):
 | |
|     """Alternate random number generator using sources provided
 | |
|     by the operating system (such as /dev/urandom on Unix or
 | |
|     CryptGenRandom on Windows).
 | |
| 
 | |
|      Not available on all systems (see os.urandom() for details).
 | |
| 
 | |
|     """
 | |
| 
 | |
|     def random(self):
 | |
|         """Get the next random number in the range 0.0 <= X < 1.0."""
 | |
|         return (int.from_bytes(_urandom(7)) >> 3) * RECIP_BPF
 | |
| 
 | |
|     def getrandbits(self, k):
 | |
|         """getrandbits(k) -> x.  Generates an int with k random bits."""
 | |
|         if k < 0:
 | |
|             raise ValueError('number of bits must be non-negative')
 | |
|         numbytes = (k + 7) // 8                       # bits / 8 and rounded up
 | |
|         x = int.from_bytes(_urandom(numbytes))
 | |
|         return x >> (numbytes * 8 - k)                # trim excess bits
 | |
| 
 | |
|     def randbytes(self, n):
 | |
|         """Generate n random bytes."""
 | |
|         # os.urandom(n) fails with ValueError for n < 0
 | |
|         # and returns an empty bytes string for n == 0.
 | |
|         return _urandom(n)
 | |
| 
 | |
|     def seed(self, *args, **kwds):
 | |
|         "Stub method.  Not used for a system random number generator."
 | |
|         return None
 | |
| 
 | |
|     def _notimplemented(self, *args, **kwds):
 | |
|         "Method should not be called for a system random number generator."
 | |
|         raise NotImplementedError('System entropy source does not have state.')
 | |
|     getstate = setstate = _notimplemented
 | |
| 
 | |
| 
 | |
| # ----------------------------------------------------------------------
 | |
| # Create one instance, seeded from current time, and export its methods
 | |
| # as module-level functions.  The functions share state across all uses
 | |
| # (both in the user's code and in the Python libraries), but that's fine
 | |
| # for most programs and is easier for the casual user than making them
 | |
| # instantiate their own Random() instance.
 | |
| 
 | |
| _inst = Random()
 | |
| seed = _inst.seed
 | |
| random = _inst.random
 | |
| uniform = _inst.uniform
 | |
| triangular = _inst.triangular
 | |
| randint = _inst.randint
 | |
| choice = _inst.choice
 | |
| randrange = _inst.randrange
 | |
| sample = _inst.sample
 | |
| shuffle = _inst.shuffle
 | |
| choices = _inst.choices
 | |
| normalvariate = _inst.normalvariate
 | |
| lognormvariate = _inst.lognormvariate
 | |
| expovariate = _inst.expovariate
 | |
| vonmisesvariate = _inst.vonmisesvariate
 | |
| gammavariate = _inst.gammavariate
 | |
| gauss = _inst.gauss
 | |
| betavariate = _inst.betavariate
 | |
| binomialvariate = _inst.binomialvariate
 | |
| paretovariate = _inst.paretovariate
 | |
| weibullvariate = _inst.weibullvariate
 | |
| getstate = _inst.getstate
 | |
| setstate = _inst.setstate
 | |
| getrandbits = _inst.getrandbits
 | |
| randbytes = _inst.randbytes
 | |
| 
 | |
| 
 | |
| ## ------------------------------------------------------
 | |
| ## ----------------- test program -----------------------
 | |
| 
 | |
| def _test_generator(n, func, args):
 | |
|     from statistics import stdev, fmean as mean
 | |
|     from time import perf_counter
 | |
| 
 | |
|     t0 = perf_counter()
 | |
|     data = [func(*args) for i in _repeat(None, n)]
 | |
|     t1 = perf_counter()
 | |
| 
 | |
|     xbar = mean(data)
 | |
|     sigma = stdev(data, xbar)
 | |
|     low = min(data)
 | |
|     high = max(data)
 | |
| 
 | |
|     print(f'{t1 - t0:.3f} sec, {n} times {func.__name__}{args!r}')
 | |
|     print('avg %g, stddev %g, min %g, max %g\n' % (xbar, sigma, low, high))
 | |
| 
 | |
| 
 | |
| def _test(N=10_000):
 | |
|     _test_generator(N, random, ())
 | |
|     _test_generator(N, normalvariate, (0.0, 1.0))
 | |
|     _test_generator(N, lognormvariate, (0.0, 1.0))
 | |
|     _test_generator(N, vonmisesvariate, (0.0, 1.0))
 | |
|     _test_generator(N, binomialvariate, (15, 0.60))
 | |
|     _test_generator(N, binomialvariate, (100, 0.75))
 | |
|     _test_generator(N, gammavariate, (0.01, 1.0))
 | |
|     _test_generator(N, gammavariate, (0.1, 1.0))
 | |
|     _test_generator(N, gammavariate, (0.1, 2.0))
 | |
|     _test_generator(N, gammavariate, (0.5, 1.0))
 | |
|     _test_generator(N, gammavariate, (0.9, 1.0))
 | |
|     _test_generator(N, gammavariate, (1.0, 1.0))
 | |
|     _test_generator(N, gammavariate, (2.0, 1.0))
 | |
|     _test_generator(N, gammavariate, (20.0, 1.0))
 | |
|     _test_generator(N, gammavariate, (200.0, 1.0))
 | |
|     _test_generator(N, gauss, (0.0, 1.0))
 | |
|     _test_generator(N, betavariate, (3.0, 3.0))
 | |
|     _test_generator(N, triangular, (0.0, 1.0, 1.0 / 3.0))
 | |
| 
 | |
| 
 | |
| ## ------------------------------------------------------
 | |
| ## ------------------ fork support  ---------------------
 | |
| 
 | |
| if hasattr(_os, "fork"):
 | |
|     _os.register_at_fork(after_in_child=_inst.seed)
 | |
| 
 | |
| 
 | |
| if __name__ == '__main__':
 | |
|     _test()
 | 
