1 """Random variable generators.
11 generate random permutation
13 distributions on the real line:
14 ------------------------------
25 distributions on the circle (angles 0 to 2pi)
26 ---------------------------------------------
30 General notes on the underlying Mersenne Twister core generator:
32 * The period is 2**19937-1.
33 * It is one of the most extensively tested generators in existence.
34 * Without a direct way to compute N steps forward, the semantics of
35 jumpahead(n) are weakened to simply jump to another distant state and rely
36 on the large period to avoid overlapping sequences.
37 * The random() method is implemented in C, executes in a single Python step,
38 and is, therefore, threadsafe.
42 from __future__
import division
43 from warnings
import warn
as _warn
44 from types
import MethodType
as _MethodType
, BuiltinMethodType
as _BuiltinMethodType
45 from math
import log
as _log
, exp
as _exp
, pi
as _pi
, e
as _e
, ceil
as _ceil
46 from math
import sqrt
as _sqrt
, acos
as _acos
, cos
as _cos
, sin
as _sin
47 from os
import urandom
as _urandom
48 from binascii
import hexlify
as _hexlify
50 __all__
= ["Random","seed","random","uniform","randint","choice","sample",
51 "randrange","shuffle","normalvariate","lognormvariate",
52 "expovariate","vonmisesvariate","gammavariate","triangular",
53 "gauss","betavariate","paretovariate","weibullvariate",
54 "getstate","setstate","jumpahead", "WichmannHill", "getrandbits",
57 NV_MAGICCONST
= 4 * _exp(-0.5)/_sqrt(2.0)
60 SG_MAGICCONST
= 1.0 + _log(4.5)
61 BPF
= 53 # Number of bits in a float
65 # Translated by Guido van Rossum from C source provided by
66 # Adrian Baddeley. Adapted by Raymond Hettinger for use with
67 # the Mersenne Twister and os.urandom() core generators.
71 class Random(_random
.Random
):
72 """Random number generator base class used by bound module functions.
74 Used to instantiate instances of Random to get generators that don't
75 share state. Especially useful for multi-threaded programs, creating
76 a different instance of Random for each thread, and using the jumpahead()
77 method to ensure that the generated sequences seen by each thread don't
80 Class Random can also be subclassed if you want to use a different basic
81 generator of your own devising: in that case, override the following
82 methods: random(), seed(), getstate(), setstate() and jumpahead().
83 Optionally, implement a getrandbits() method so that randrange() can cover
84 arbitrarily large ranges.
88 VERSION
= 3 # used by getstate/setstate
90 def __init__(self
, x
=None):
91 """Initialize an instance.
93 Optional argument x controls seeding, as for Random.seed().
97 self
.gauss_next
= None
99 def seed(self
, a
=None):
100 """Initialize internal state from hashable object.
102 None or no argument seeds from current time or from an operating
103 system specific randomness source if available.
105 If a is not None or an int or long, hash(a) is used instead.
110 a
= long(_hexlify(_urandom(16)), 16)
111 except NotImplementedError:
113 a
= long(time
.time() * 256) # use fractional seconds
115 super(Random
, self
).seed(a
)
116 self
.gauss_next
= None
119 """Return internal state; can be passed to setstate() later."""
120 return self
.VERSION
, super(Random
, self
).getstate(), self
.gauss_next
122 def setstate(self
, state
):
123 """Restore internal state from object returned by getstate()."""
126 version
, internalstate
, self
.gauss_next
= state
127 super(Random
, self
).setstate(internalstate
)
129 version
, internalstate
, self
.gauss_next
= state
130 # In version 2, the state was saved as signed ints, which causes
131 # inconsistencies between 32/64-bit systems. The state is
132 # really unsigned 32-bit ints, so we convert negative ints from
133 # version 2 to positive longs for version 3.
135 internalstate
= tuple( long(x
) % (2**32) for x
in internalstate
)
136 except ValueError, e
:
138 super(Random
, self
).setstate(internalstate
)
140 raise ValueError("state with version %s passed to "
141 "Random.setstate() of version %s" %
142 (version
, self
.VERSION
))
144 ## ---- Methods below this point do not need to be overridden when
145 ## ---- subclassing for the purpose of using a different core generator.
147 ## -------------------- pickle support -------------------
149 def __getstate__(self
): # for pickle
150 return self
.getstate()
152 def __setstate__(self
, state
): # for pickle
155 def __reduce__(self
):
156 return self
.__class
__, (), self
.getstate()
158 ## -------------------- integer methods -------------------
160 def randrange(self
, start
, stop
=None, step
=1, int=int, default
=None,
162 """Choose a random item from range(start, stop[, step]).
164 This fixes the problem with randint() which includes the
165 endpoint; in Python this is usually not what you want.
166 Do not supply the 'int', 'default', and 'maxwidth' arguments.
169 # This code is a bit messy to make it fast for the
170 # common case while still doing adequate error checking.
173 raise ValueError, "non-integer arg 1 for randrange()"
176 if istart
>= maxwidth
:
177 return self
._randbelow
(istart
)
178 return int(self
.random() * istart
)
179 raise ValueError, "empty range for randrange()"
181 # stop argument supplied.
184 raise ValueError, "non-integer stop for randrange()"
185 width
= istop
- istart
186 if step
== 1 and width
> 0:
188 # int(istart + self.random()*width)
189 # instead would be incorrect. For example, consider istart
190 # = -2 and istop = 0. Then the guts would be in
191 # -2.0 to 0.0 exclusive on both ends (ignoring that random()
192 # might return 0.0), and because int() truncates toward 0, the
193 # final result would be -1 or 0 (instead of -2 or -1).
194 # istart + int(self.random()*width)
195 # would also be incorrect, for a subtler reason: the RHS
196 # can return a long, and then randrange() would also return
197 # a long, but we're supposed to return an int (for backward
200 if width
>= maxwidth
:
201 return int(istart
+ self
._randbelow
(width
))
202 return int(istart
+ int(self
.random()*width
))
204 raise ValueError, "empty range for randrange() (%d,%d, %d)" % (istart
, istop
, width
)
206 # Non-unit step argument supplied.
209 raise ValueError, "non-integer step for randrange()"
211 n
= (width
+ istep
- 1) // istep
213 n
= (width
+ istep
+ 1) // istep
215 raise ValueError, "zero step for randrange()"
218 raise ValueError, "empty range for randrange()"
221 return istart
+ istep
*self
._randbelow
(n
)
222 return istart
+ istep
*int(self
.random() * n
)
224 def randint(self
, a
, b
):
225 """Return random integer in range [a, b], including both end points.
228 return self
.randrange(a
, b
+1)
230 def _randbelow(self
, n
, _log
=_log
, int=int, _maxwidth
=1L<<BPF
,
231 _Method
=_MethodType
, _BuiltinMethod
=_BuiltinMethodType
):
232 """Return a random int in the range [0,n)
234 Handles the case where n has more bits than returned
235 by a single call to the underlying generator.
239 getrandbits
= self
.getrandbits
240 except AttributeError:
243 # Only call self.getrandbits if the original random() builtin method
244 # has not been overridden or if a new getrandbits() was supplied.
245 # This assures that the two methods correspond.
246 if type(self
.random
) is _BuiltinMethod
or type(getrandbits
) is _Method
:
247 k
= int(1.00001 + _log(n
-1, 2.0)) # 2**k > n-1 > 2**(k-2)
253 _warn("Underlying random() generator does not supply \n"
254 "enough bits to choose from a population range this large")
255 return int(self
.random() * n
)
257 ## -------------------- sequence methods -------------------
259 def choice(self
, seq
):
260 """Choose a random element from a non-empty sequence."""
261 return seq
[int(self
.random() * len(seq
))] # raises IndexError if seq is empty
263 def shuffle(self
, x
, random
=None, int=int):
264 """x, random=random.random -> shuffle list x in place; return None.
266 Optional arg random is a 0-argument function returning a random
267 float in [0.0, 1.0); by default, the standard random.random.
272 for i
in reversed(xrange(1, len(x
))):
273 # pick an element in x[:i+1] with which to exchange x[i]
274 j
= int(random() * (i
+1))
275 x
[i
], x
[j
] = x
[j
], x
[i
]
277 def sample(self
, population
, k
):
278 """Chooses k unique random elements from a population sequence.
280 Returns a new list containing elements from the population while
281 leaving the original population unchanged. The resulting list is
282 in selection order so that all sub-slices will also be valid random
283 samples. This allows raffle winners (the sample) to be partitioned
284 into grand prize and second place winners (the subslices).
286 Members of the population need not be hashable or unique. If the
287 population contains repeats, then each occurrence is a possible
288 selection in the sample.
290 To choose a sample in a range of integers, use xrange as an argument.
291 This is especially fast and space efficient for sampling from a
292 large population: sample(xrange(10000000), 60)
295 # XXX Although the documentation says `population` is "a sequence",
296 # XXX attempts are made to cater to any iterable with a __len__
297 # XXX method. This has had mixed success. Examples from both
298 # XXX sides: sets work fine, and should become officially supported;
299 # XXX dicts are much harder, and have failed in various subtle
300 # XXX ways across attempts. Support for mapping types should probably
301 # XXX be dropped (and users should pass mapping.keys() or .values()
304 # Sampling without replacement entails tracking either potential
305 # selections (the pool) in a list or previous selections in a set.
307 # When the number of selections is small compared to the
308 # population, then tracking selections is efficient, requiring
309 # only a small set and an occasional reselection. For
310 # a larger number of selections, the pool tracking method is
311 # preferred since the list takes less space than the
312 # set and it doesn't suffer from frequent reselections.
316 raise ValueError, "sample larger than population"
320 setsize
= 21 # size of a small set minus size of an empty list
322 setsize
+= 4 ** _ceil(_log(k
* 3, 4)) # table size for big sets
323 if n
<= setsize
or hasattr(population
, "keys"):
324 # An n-length list is smaller than a k-length set, or this is a
325 # mapping type so the other algorithm wouldn't work.
326 pool
= list(population
)
327 for i
in xrange(k
): # invariant: non-selected at [0,n-i)
328 j
= _int(random() * (n
-i
))
330 pool
[j
] = pool
[n
-i
-1] # move non-selected item into vacancy
334 selected_add
= selected
.add
336 j
= _int(random() * n
)
338 j
= _int(random() * n
)
340 result
[i
] = population
[j
]
341 except (TypeError, KeyError): # handle (at least) sets
342 if isinstance(population
, list):
344 return self
.sample(tuple(population
), k
)
347 ## -------------------- real-valued distributions -------------------
349 ## -------------------- uniform distribution -------------------
351 def uniform(self
, a
, b
):
352 """Get a random number in the range [a, b)."""
353 return a
+ (b
-a
) * self
.random()
355 ## -------------------- triangular --------------------
357 def triangular(self
, low
=0.0, high
=1.0, mode
=None):
358 """Triangular distribution.
360 Continuous distribution bounded by given lower and upper limits,
361 and having a given mode value in-between.
363 http://en.wikipedia.org/wiki/Triangular_distribution
367 c
= 0.5 if mode
is None else (mode
- low
) / (high
- low
)
371 low
, high
= high
, low
372 return low
+ (high
- low
) * (u
* c
) ** 0.5
374 ## -------------------- normal distribution --------------------
376 def normalvariate(self
, mu
, sigma
):
377 """Normal distribution.
379 mu is the mean, and sigma is the standard deviation.
382 # mu = mean, sigma = standard deviation
384 # Uses Kinderman and Monahan method. Reference: Kinderman,
385 # A.J. and Monahan, J.F., "Computer generation of random
386 # variables using the ratio of uniform deviates", ACM Trans
387 # Math Software, 3, (1977), pp257-260.
393 z
= NV_MAGICCONST
*(u1
-0.5)/u2
399 ## -------------------- lognormal distribution --------------------
401 def lognormvariate(self
, mu
, sigma
):
402 """Log normal distribution.
404 If you take the natural logarithm of this distribution, you'll get a
405 normal distribution with mean mu and standard deviation sigma.
406 mu can have any value, and sigma must be greater than zero.
409 return _exp(self
.normalvariate(mu
, sigma
))
411 ## -------------------- exponential distribution --------------------
413 def expovariate(self
, lambd
):
414 """Exponential distribution.
416 lambd is 1.0 divided by the desired mean. It should be
417 nonzero. (The parameter would be called "lambda", but that is
418 a reserved word in Python.) Returned values range from 0 to
419 positive infinity if lambd is positive, and from negative
420 infinity to 0 if lambd is negative.
423 # lambd: rate lambd = 1/mean
424 # ('lambda' is a Python reserved word)
430 return -_log(u
)/lambd
432 ## -------------------- von Mises distribution --------------------
434 def vonmisesvariate(self
, mu
, kappa
):
435 """Circular data distribution.
437 mu is the mean angle, expressed in radians between 0 and 2*pi, and
438 kappa is the concentration parameter, which must be greater than or
439 equal to zero. If kappa is equal to zero, this distribution reduces
440 to a uniform random angle over the range 0 to 2*pi.
443 # mu: mean angle (in radians between 0 and 2*pi)
444 # kappa: concentration parameter kappa (>= 0)
445 # if kappa = 0 generate uniform random angle
447 # Based upon an algorithm published in: Fisher, N.I.,
448 # "Statistical Analysis of Circular Data", Cambridge
449 # University Press, 1993.
451 # Thanks to Magnus Kessler for a correction to the
452 # implementation of step 4.
456 return TWOPI
* random()
458 a
= 1.0 + _sqrt(1.0 + 4.0 * kappa
* kappa
)
459 b
= (a
- _sqrt(2.0 * a
))/(2.0 * kappa
)
460 r
= (1.0 + b
* b
)/(2.0 * b
)
466 f
= (1.0 + r
* z
)/(r
+ z
)
471 if u2
< c
* (2.0 - c
) or u2
<= c
* _exp(1.0 - c
):
476 theta
= (mu
% TWOPI
) + _acos(f
)
478 theta
= (mu
% TWOPI
) - _acos(f
)
482 ## -------------------- gamma distribution --------------------
484 def gammavariate(self
, alpha
, beta
):
485 """Gamma distribution. Not the gamma function!
487 Conditions on the parameters are alpha > 0 and beta > 0.
491 # alpha > 0, beta > 0, mean is alpha*beta, variance is alpha*beta**2
493 # Warning: a few older sources define the gamma distribution in terms
495 if alpha
<= 0.0 or beta
<= 0.0:
496 raise ValueError, 'gammavariate: alpha and beta must be > 0.0'
501 # Uses R.C.H. Cheng, "The generation of Gamma
502 # variables with non-integral shape parameters",
503 # Applied Statistics, (1977), 26, No. 1, p71-74
505 ainv
= _sqrt(2.0 * alpha
- 1.0)
511 if not 1e-7 < u1
< .9999999:
514 v
= _log(u1
/(1.0-u1
))/ainv
518 if r
+ SG_MAGICCONST
- 4.5*z
>= 0.0 or r
>= _log(z
):
526 return -_log(u
) * beta
528 else: # alpha is between 0 and 1 (exclusive)
530 # Uses ALGORITHM GS of Statistical Computing - Kennedy & Gentle
539 x
= -_log((b
-p
)/alpha
)
542 if u1
<= x
** (alpha
- 1.0):
548 ## -------------------- Gauss (faster alternative) --------------------
550 def gauss(self
, mu
, sigma
):
551 """Gaussian distribution.
553 mu is the mean, and sigma is the standard deviation. This is
554 slightly faster than the normalvariate() function.
556 Not thread-safe without a lock around calls.
560 # When x and y are two variables from [0, 1), uniformly
563 # cos(2*pi*x)*sqrt(-2*log(1-y))
564 # sin(2*pi*x)*sqrt(-2*log(1-y))
566 # are two *independent* variables with normal distribution
567 # (mu = 0, sigma = 1).
569 # (corrected version; bug discovered by Mike Miller, fixed by LM)
571 # Multithreading note: When two threads call this function
572 # simultaneously, it is possible that they will receive the
573 # same return value. The window is very small though. To
574 # avoid this, you have to use a lock around all calls. (I
575 # didn't want to slow this down in the serial case by using a
580 self
.gauss_next
= None
582 x2pi
= random() * TWOPI
583 g2rad
= _sqrt(-2.0 * _log(1.0 - random()))
584 z
= _cos(x2pi
) * g2rad
585 self
.gauss_next
= _sin(x2pi
) * g2rad
589 ## -------------------- beta --------------------
591 ## http://sourceforge.net/bugs/?func=detailbug&bug_id=130030&group_id=5470
592 ## for Ivan Frohne's insightful analysis of why the original implementation:
594 ## def betavariate(self, alpha, beta):
595 ## # Discrete Event Simulation in C, pp 87-88.
597 ## y = self.expovariate(alpha)
598 ## z = self.expovariate(1.0/beta)
601 ## was dead wrong, and how it probably got that way.
603 def betavariate(self
, alpha
, beta
):
604 """Beta distribution.
606 Conditions on the parameters are alpha > 0 and beta > 0.
607 Returned values range between 0 and 1.
611 # This version due to Janne Sinkkonen, and matches all the std
612 # texts (e.g., Knuth Vol 2 Ed 3 pg 134 "the beta distribution").
613 y
= self
.gammavariate(alpha
, 1.)
617 return y
/ (y
+ self
.gammavariate(beta
, 1.))
619 ## -------------------- Pareto --------------------
621 def paretovariate(self
, alpha
):
622 """Pareto distribution. alpha is the shape parameter."""
625 u
= 1.0 - self
.random()
626 return 1.0 / pow(u
, 1.0/alpha
)
628 ## -------------------- Weibull --------------------
630 def weibullvariate(self
, alpha
, beta
):
631 """Weibull distribution.
633 alpha is the scale parameter and beta is the shape parameter.
636 # Jain, pg. 499; bug fix courtesy Bill Arms
638 u
= 1.0 - self
.random()
639 return alpha
* pow(-_log(u
), 1.0/beta
)
641 ## -------------------- Wichmann-Hill -------------------
643 class WichmannHill(Random
):
645 VERSION
= 1 # used by getstate/setstate
647 def seed(self
, a
=None):
648 """Initialize internal state from hashable object.
650 None or no argument seeds from current time or from an operating
651 system specific randomness source if available.
653 If a is not None or an int or long, hash(a) is used instead.
655 If a is an int or long, a is used directly. Distinct values between
656 0 and 27814431486575L inclusive are guaranteed to yield distinct
657 internal states (this guarantee is specific to the default
658 Wichmann-Hill generator).
663 a
= long(_hexlify(_urandom(16)), 16)
664 except NotImplementedError:
666 a
= long(time
.time() * 256) # use fractional seconds
668 if not isinstance(a
, (int, long)):
671 a
, x
= divmod(a
, 30268)
672 a
, y
= divmod(a
, 30306)
673 a
, z
= divmod(a
, 30322)
674 self
._seed
= int(x
)+1, int(y
)+1, int(z
)+1
676 self
.gauss_next
= None
679 """Get the next random number in the range [0.0, 1.0)."""
681 # Wichman-Hill random number generator.
683 # Wichmann, B. A. & Hill, I. D. (1982)
685 # An efficient and portable pseudo-random number generator
686 # Applied Statistics 31 (1982) 188-190
689 # Correction to Algorithm AS 183
690 # Applied Statistics 33 (1984) 123
692 # McLeod, A. I. (1985)
693 # A remark on Algorithm AS 183
694 # Applied Statistics 34 (1985),198-200
696 # This part is thread-unsafe:
697 # BEGIN CRITICAL SECTION
699 x
= (171 * x
) % 30269
700 y
= (172 * y
) % 30307
701 z
= (170 * z
) % 30323
703 # END CRITICAL SECTION
705 # Note: on a platform using IEEE-754 double arithmetic, this can
706 # never return 0.0 (asserted by Tim; proof too long for a comment).
707 return (x
/30269.0 + y
/30307.0 + z
/30323.0) % 1.0
710 """Return internal state; can be passed to setstate() later."""
711 return self
.VERSION
, self
._seed
, self
.gauss_next
713 def setstate(self
, state
):
714 """Restore internal state from object returned by getstate()."""
717 version
, self
._seed
, self
.gauss_next
= state
719 raise ValueError("state with version %s passed to "
720 "Random.setstate() of version %s" %
721 (version
, self
.VERSION
))
723 def jumpahead(self
, n
):
724 """Act as if n calls to random() were made, but quickly.
726 n is an int, greater than or equal to 0.
728 Example use: If you have 2 threads and know that each will
729 consume no more than a million random numbers, create two Random
730 objects r1 and r2, then do
731 r2.setstate(r1.getstate())
732 r2.jumpahead(1000000)
733 Then r1 and r2 will use guaranteed-disjoint segments of the full
738 raise ValueError("n must be >= 0")
740 x
= int(x
* pow(171, n
, 30269)) % 30269
741 y
= int(y
* pow(172, n
, 30307)) % 30307
742 z
= int(z
* pow(170, n
, 30323)) % 30323
745 def __whseed(self
, x
=0, y
=0, z
=0):
746 """Set the Wichmann-Hill seed from (x, y, z).
748 These must be integers in the range [0, 256).
751 if not type(x
) == type(y
) == type(z
) == int:
752 raise TypeError('seeds must be integers')
753 if not (0 <= x
< 256 and 0 <= y
< 256 and 0 <= z
< 256):
754 raise ValueError('seeds must be in range(0, 256)')
756 # Initialize from current time
758 t
= long(time
.time() * 256)
759 t
= int((t
&0xffffff) ^
(t
>>24))
760 t
, x
= divmod(t
, 256)
761 t
, y
= divmod(t
, 256)
762 t
, z
= divmod(t
, 256)
763 # Zero is a poor seed, so substitute 1
764 self
._seed
= (x
or 1, y
or 1, z
or 1)
766 self
.gauss_next
= None
768 def whseed(self
, a
=None):
769 """Seed from hashable object's hash code.
771 None or no argument seeds from current time. It is not guaranteed
772 that objects with distinct hash codes lead to distinct internal
775 This is obsolete, provided for compatibility with the seed routine
776 used prior to Python 2.1. Use the .seed() method instead.
783 a
, x
= divmod(a
, 256)
784 a
, y
= divmod(a
, 256)
785 a
, z
= divmod(a
, 256)
786 x
= (x
+ a
) % 256 or 1
787 y
= (y
+ a
) % 256 or 1
788 z
= (z
+ a
) % 256 or 1
789 self
.__whseed
(x
, y
, z
)
791 ## --------------- Operating System Random Source ------------------
793 class SystemRandom(Random
):
794 """Alternate random number generator using sources provided
795 by the operating system (such as /dev/urandom on Unix or
796 CryptGenRandom on Windows).
798 Not available on all systems (see os.urandom() for details).
802 """Get the next random number in the range [0.0, 1.0)."""
803 return (long(_hexlify(_urandom(7)), 16) >> 3) * RECIP_BPF
805 def getrandbits(self
, k
):
806 """getrandbits(k) -> x. Generates a long int with k random bits."""
808 raise ValueError('number of bits must be greater than zero')
810 raise TypeError('number of bits should be an integer')
811 bytes
= (k
+ 7) // 8 # bits / 8 and rounded up
812 x
= long(_hexlify(_urandom(bytes
)), 16)
813 return x
>> (bytes
* 8 - k
) # trim excess bits
815 def _stub(self
, *args
, **kwds
):
816 "Stub method. Not used for a system random number generator."
818 seed
= jumpahead
= _stub
820 def _notimplemented(self
, *args
, **kwds
):
821 "Method should not be called for a system random number generator."
822 raise NotImplementedError('System entropy source does not have state.')
823 getstate
= setstate
= _notimplemented
825 ## -------------------- test program --------------------
827 def _test_generator(n
, func
, args
):
829 print n
, 'times', func
.__name
__
839 smallest
= min(x
, smallest
)
840 largest
= max(x
, largest
)
842 print round(t1
-t0
, 3), 'sec,',
844 stddev
= _sqrt(sqsum
/n
- avg
*avg
)
845 print 'avg %g, stddev %g, min %g, max %g' % \
846 (avg
, stddev
, smallest
, largest
)
850 _test_generator(N
, random
, ())
851 _test_generator(N
, normalvariate
, (0.0, 1.0))
852 _test_generator(N
, lognormvariate
, (0.0, 1.0))
853 _test_generator(N
, vonmisesvariate
, (0.0, 1.0))
854 _test_generator(N
, gammavariate
, (0.01, 1.0))
855 _test_generator(N
, gammavariate
, (0.1, 1.0))
856 _test_generator(N
, gammavariate
, (0.1, 2.0))
857 _test_generator(N
, gammavariate
, (0.5, 1.0))
858 _test_generator(N
, gammavariate
, (0.9, 1.0))
859 _test_generator(N
, gammavariate
, (1.0, 1.0))
860 _test_generator(N
, gammavariate
, (2.0, 1.0))
861 _test_generator(N
, gammavariate
, (20.0, 1.0))
862 _test_generator(N
, gammavariate
, (200.0, 1.0))
863 _test_generator(N
, gauss
, (0.0, 1.0))
864 _test_generator(N
, betavariate
, (3.0, 3.0))
865 _test_generator(N
, triangular
, (0.0, 1.0, 1.0/3.0))
867 # Create one instance, seeded from current time, and export its methods
868 # as module-level functions. The functions share state across all uses
869 #(both in the user's code and in the Python libraries), but that's fine
870 # for most programs and is easier for the casual user than making them
871 # instantiate their own Random() instance.
875 random
= _inst
.random
876 uniform
= _inst
.uniform
877 triangular
= _inst
.triangular
878 randint
= _inst
.randint
879 choice
= _inst
.choice
880 randrange
= _inst
.randrange
881 sample
= _inst
.sample
882 shuffle
= _inst
.shuffle
883 normalvariate
= _inst
.normalvariate
884 lognormvariate
= _inst
.lognormvariate
885 expovariate
= _inst
.expovariate
886 vonmisesvariate
= _inst
.vonmisesvariate
887 gammavariate
= _inst
.gammavariate
889 betavariate
= _inst
.betavariate
890 paretovariate
= _inst
.paretovariate
891 weibullvariate
= _inst
.weibullvariate
892 getstate
= _inst
.getstate
893 setstate
= _inst
.setstate
894 jumpahead
= _inst
.jumpahead
895 getrandbits
= _inst
.getrandbits
897 if __name__
== '__main__':