1:mod:`random` --- Generate pseudo-random numbers
2================================================
3
4.. module:: random
5   :synopsis: Generate pseudo-random numbers with various common distributions.
6
7**Source code:** :source:`Lib/random.py`
8
9--------------
10
11This module implements pseudo-random number generators for various
12distributions.
13
14For integers, there is uniform selection from a range. For sequences, there is
15uniform selection of a random element, a function to generate a random
16permutation of a list in-place, and a function for random sampling without
17replacement.
18
19On the real line, there are functions to compute uniform, normal (Gaussian),
20lognormal, negative exponential, gamma, and beta distributions. For generating
21distributions of angles, the von Mises distribution is available.
22
23Almost all module functions depend on the basic function :func:`.random`, which
24generates a random float uniformly in the semi-open range [0.0, 1.0).  Python
25uses the Mersenne Twister as the core generator.  It produces 53-bit precision
26floats and has a period of 2\*\*19937-1.  The underlying implementation in C is
27both fast and threadsafe.  The Mersenne Twister is one of the most extensively
28tested random number generators in existence.  However, being completely
29deterministic, it is not suitable for all purposes, and is completely unsuitable
30for cryptographic purposes.
31
32The functions supplied by this module are actually bound methods of a hidden
33instance of the :class:`random.Random` class.  You can instantiate your own
34instances of :class:`Random` to get generators that don't share state.
35
36Class :class:`Random` can also be subclassed if you want to use a different
37basic generator of your own devising: in that case, override the :meth:`~Random.random`,
38:meth:`~Random.seed`, :meth:`~Random.getstate`, and :meth:`~Random.setstate` methods.
39Optionally, a new generator can supply a :meth:`~Random.getrandbits` method --- this
40allows :meth:`randrange` to produce selections over an arbitrarily large range.
41
42The :mod:`random` module also provides the :class:`SystemRandom` class which
43uses the system function :func:`os.urandom` to generate random numbers
44from sources provided by the operating system.
45
46.. warning::
47
48   The pseudo-random generators of this module should not be used for
49   security purposes.  For security or cryptographic uses, see the
50   :mod:`secrets` module.
51
52.. seealso::
53
54   M. Matsumoto and T. Nishimura, "Mersenne Twister: A 623-dimensionally
55   equidistributed uniform pseudorandom number generator", ACM Transactions on
56   Modeling and Computer Simulation Vol. 8, No. 1, January pp.3--30 1998.
57
58
59   `Complementary-Multiply-with-Carry recipe
60   <https://code.activestate.com/recipes/576707/>`_ for a compatible alternative
61   random number generator with a long period and comparatively simple update
62   operations.
63
64
65Bookkeeping functions
66---------------------
67
68.. function:: seed(a=None, version=2)
69
70   Initialize the random number generator.
71
72   If *a* is omitted or ``None``, the current system time is used.  If
73   randomness sources are provided by the operating system, they are used
74   instead of the system time (see the :func:`os.urandom` function for details
75   on availability).
76
77   If *a* is an int, it is used directly.
78
79   With version 2 (the default), a :class:`str`, :class:`bytes`, or :class:`bytearray`
80   object gets converted to an :class:`int` and all of its bits are used.
81
82   With version 1 (provided for reproducing random sequences from older versions
83   of Python), the algorithm for :class:`str` and :class:`bytes` generates a
84   narrower range of seeds.
85
86   .. versionchanged:: 3.2
87      Moved to the version 2 scheme which uses all of the bits in a string seed.
88
89.. function:: getstate()
90
91   Return an object capturing the current internal state of the generator.  This
92   object can be passed to :func:`setstate` to restore the state.
93
94
95.. function:: setstate(state)
96
97   *state* should have been obtained from a previous call to :func:`getstate`, and
98   :func:`setstate` restores the internal state of the generator to what it was at
99   the time :func:`getstate` was called.
100
101
102.. function:: getrandbits(k)
103
104   Returns a Python integer with *k* random bits. This method is supplied with
105   the Mersenne Twister generator and some other generators may also provide it
106   as an optional part of the API. When available, :meth:`getrandbits` enables
107   :meth:`randrange` to handle arbitrarily large ranges.
108
109
110Functions for integers
111----------------------
112
113.. function:: randrange(stop)
114              randrange(start, stop[, step])
115
116   Return a randomly selected element from ``range(start, stop, step)``.  This is
117   equivalent to ``choice(range(start, stop, step))``, but doesn't actually build a
118   range object.
119
120   The positional argument pattern matches that of :func:`range`.  Keyword arguments
121   should not be used because the function may use them in unexpected ways.
122
123   .. versionchanged:: 3.2
124      :meth:`randrange` is more sophisticated about producing equally distributed
125      values.  Formerly it used a style like ``int(random()*n)`` which could produce
126      slightly uneven distributions.
127
128.. function:: randint(a, b)
129
130   Return a random integer *N* such that ``a <= N <= b``.  Alias for
131   ``randrange(a, b+1)``.
132
133
134Functions for sequences
135-----------------------
136
137.. function:: choice(seq)
138
139   Return a random element from the non-empty sequence *seq*. If *seq* is empty,
140   raises :exc:`IndexError`.
141
142.. function:: choices(population, weights=None, *, cum_weights=None, k=1)
143
144   Return a *k* sized list of elements chosen from the *population* with replacement.
145   If the *population* is empty, raises :exc:`IndexError`.
146
147   If a *weights* sequence is specified, selections are made according to the
148   relative weights.  Alternatively, if a *cum_weights* sequence is given, the
149   selections are made according to the cumulative weights (perhaps computed
150   using :func:`itertools.accumulate`).  For example, the relative weights
151   ``[10, 5, 30, 5]`` are equivalent to the cumulative weights
152   ``[10, 15, 45, 50]``.  Internally, the relative weights are converted to
153   cumulative weights before making selections, so supplying the cumulative
154   weights saves work.
155
156   If neither *weights* nor *cum_weights* are specified, selections are made
157   with equal probability.  If a weights sequence is supplied, it must be
158   the same length as the *population* sequence.  It is a :exc:`TypeError`
159   to specify both *weights* and *cum_weights*.
160
161   The *weights* or *cum_weights* can use any numeric type that interoperates
162   with the :class:`float` values returned by :func:`random` (that includes
163   integers, floats, and fractions but excludes decimals).  Weights are
164   assumed to be non-negative.
165
166   For a given seed, the :func:`choices` function with equal weighting
167   typically produces a different sequence than repeated calls to
168   :func:`choice`.  The algorithm used by :func:`choices` uses floating
169   point arithmetic for internal consistency and speed.  The algorithm used
170   by :func:`choice` defaults to integer arithmetic with repeated selections
171   to avoid small biases from round-off error.
172
173   .. versionadded:: 3.6
174
175
176.. function:: shuffle(x[, random])
177
178   Shuffle the sequence *x* in place.
179
180   The optional argument *random* is a 0-argument function returning a random
181   float in [0.0, 1.0); by default, this is the function :func:`.random`.
182
183   To shuffle an immutable sequence and return a new shuffled list, use
184   ``sample(x, k=len(x))`` instead.
185
186   Note that even for small ``len(x)``, the total number of permutations of *x*
187   can quickly grow larger than the period of most random number generators.
188   This implies that most permutations of a long sequence can never be
189   generated.  For example, a sequence of length 2080 is the largest that
190   can fit within the period of the Mersenne Twister random number generator.
191
192
193.. function:: sample(population, k)
194
195   Return a *k* length list of unique elements chosen from the population sequence
196   or set. Used for random sampling without replacement.
197
198   Returns a new list containing elements from the population while leaving the
199   original population unchanged.  The resulting list is in selection order so that
200   all sub-slices will also be valid random samples.  This allows raffle winners
201   (the sample) to be partitioned into grand prize and second place winners (the
202   subslices).
203
204   Members of the population need not be :term:`hashable` or unique.  If the population
205   contains repeats, then each occurrence is a possible selection in the sample.
206
207   To choose a sample from a range of integers, use a :func:`range` object as an
208   argument.  This is especially fast and space efficient for sampling from a large
209   population:  ``sample(range(10000000), k=60)``.
210
211   If the sample size is larger than the population size, a :exc:`ValueError`
212   is raised.
213
214Real-valued distributions
215-------------------------
216
217The following functions generate specific real-valued distributions. Function
218parameters are named after the corresponding variables in the distribution's
219equation, as used in common mathematical practice; most of these equations can
220be found in any statistics text.
221
222
223.. function:: random()
224
225   Return the next random floating point number in the range [0.0, 1.0).
226
227
228.. function:: uniform(a, b)
229
230   Return a random floating point number *N* such that ``a <= N <= b`` for
231   ``a <= b`` and ``b <= N <= a`` for ``b < a``.
232
233   The end-point value ``b`` may or may not be included in the range
234   depending on floating-point rounding in the equation ``a + (b-a) * random()``.
235
236
237.. function:: triangular(low, high, mode)
238
239   Return a random floating point number *N* such that ``low <= N <= high`` and
240   with the specified *mode* between those bounds.  The *low* and *high* bounds
241   default to zero and one.  The *mode* argument defaults to the midpoint
242   between the bounds, giving a symmetric distribution.
243
244
245.. function:: betavariate(alpha, beta)
246
247   Beta distribution.  Conditions on the parameters are ``alpha > 0`` and
248   ``beta > 0``. Returned values range between 0 and 1.
249
250
251.. function:: expovariate(lambd)
252
253   Exponential distribution.  *lambd* is 1.0 divided by the desired
254   mean.  It should be nonzero.  (The parameter would be called
255   "lambda", but that is a reserved word in Python.)  Returned values
256   range from 0 to positive infinity if *lambd* is positive, and from
257   negative infinity to 0 if *lambd* is negative.
258
259
260.. function:: gammavariate(alpha, beta)
261
262   Gamma distribution.  (*Not* the gamma function!)  Conditions on the
263   parameters are ``alpha > 0`` and ``beta > 0``.
264
265   The probability distribution function is::
266
267                 x ** (alpha - 1) * math.exp(-x / beta)
268       pdf(x) =  --------------------------------------
269                   math.gamma(alpha) * beta ** alpha
270
271
272.. function:: gauss(mu, sigma)
273
274   Gaussian distribution.  *mu* is the mean, and *sigma* is the standard
275   deviation.  This is slightly faster than the :func:`normalvariate` function
276   defined below.
277
278
279.. function:: lognormvariate(mu, sigma)
280
281   Log normal distribution.  If you take the natural logarithm of this
282   distribution, you'll get a normal distribution with mean *mu* and standard
283   deviation *sigma*.  *mu* can have any value, and *sigma* must be greater than
284   zero.
285
286
287.. function:: normalvariate(mu, sigma)
288
289   Normal distribution.  *mu* is the mean, and *sigma* is the standard deviation.
290
291
292.. function:: vonmisesvariate(mu, kappa)
293
294   *mu* is the mean angle, expressed in radians between 0 and 2\*\ *pi*, and *kappa*
295   is the concentration parameter, which must be greater than or equal to zero.  If
296   *kappa* is equal to zero, this distribution reduces to a uniform random angle
297   over the range 0 to 2\*\ *pi*.
298
299
300.. function:: paretovariate(alpha)
301
302   Pareto distribution.  *alpha* is the shape parameter.
303
304
305.. function:: weibullvariate(alpha, beta)
306
307   Weibull distribution.  *alpha* is the scale parameter and *beta* is the shape
308   parameter.
309
310
311Alternative Generator
312---------------------
313
314.. class:: Random([seed])
315
316   Class that implements the default pseudo-random number generator used by the
317   :mod:`random` module.
318
319.. class:: SystemRandom([seed])
320
321   Class that uses the :func:`os.urandom` function for generating random numbers
322   from sources provided by the operating system. Not available on all systems.
323   Does not rely on software state, and sequences are not reproducible. Accordingly,
324   the :meth:`seed` method has no effect and is ignored.
325   The :meth:`getstate` and :meth:`setstate` methods raise
326   :exc:`NotImplementedError` if called.
327
328
329Notes on Reproducibility
330------------------------
331
332Sometimes it is useful to be able to reproduce the sequences given by a pseudo
333random number generator.  By re-using a seed value, the same sequence should be
334reproducible from run to run as long as multiple threads are not running.
335
336Most of the random module's algorithms and seeding functions are subject to
337change across Python versions, but two aspects are guaranteed not to change:
338
339* If a new seeding method is added, then a backward compatible seeder will be
340  offered.
341
342* The generator's :meth:`~Random.random` method will continue to produce the same
343  sequence when the compatible seeder is given the same seed.
344
345.. _random-examples:
346
347Examples and Recipes
348--------------------
349
350Basic examples::
351
352   >>> random()                             # Random float:  0.0 <= x < 1.0
353   0.37444887175646646
354
355   >>> uniform(2.5, 10.0)                   # Random float:  2.5 <= x < 10.0
356   3.1800146073117523
357
358   >>> expovariate(1 / 5)                   # Interval between arrivals averaging 5 seconds
359   5.148957571865031
360
361   >>> randrange(10)                        # Integer from 0 to 9 inclusive
362   7
363
364   >>> randrange(0, 101, 2)                 # Even integer from 0 to 100 inclusive
365   26
366
367   >>> choice(['win', 'lose', 'draw'])      # Single random element from a sequence
368   'draw'
369
370   >>> deck = 'ace two three four'.split()
371   >>> shuffle(deck)                        # Shuffle a list
372   >>> deck
373   ['four', 'two', 'ace', 'three']
374
375   >>> sample([10, 20, 30, 40, 50], k=4)    # Four samples without replacement
376   [40, 10, 50, 30]
377
378Simulations::
379
380   >>> # Six roulette wheel spins (weighted sampling with replacement)
381   >>> choices(['red', 'black', 'green'], [18, 18, 2], k=6)
382   ['red', 'green', 'black', 'black', 'red', 'black']
383
384   >>> # Deal 20 cards without replacement from a deck of 52 playing cards
385   >>> # and determine the proportion of cards with a ten-value
386   >>> # (a ten, jack, queen, or king).
387   >>> deck = collections.Counter(tens=16, low_cards=36)
388   >>> seen = sample(list(deck.elements()), k=20)
389   >>> seen.count('tens') / 20
390   0.15
391
392   >>> # Estimate the probability of getting 5 or more heads from 7 spins
393   >>> # of a biased coin that settles on heads 60% of the time.
394   >>> def trial():
395   ...     return choices('HT', cum_weights=(0.60, 1.00), k=7).count('H') >= 5
396   ...
397   >>> sum(trial() for i in range(10_000)) / 10_000
398   0.4169
399
400   >>> # Probability of the median of 5 samples being in middle two quartiles
401   >>> def trial():
402   ...     return 2_500 <= sorted(choices(range(10_000), k=5))[2] < 7_500
403   ...
404   >>> sum(trial() for i in range(10_000)) / 10_000
405   0.7958
406
407Example of `statistical bootstrapping
408<https://en.wikipedia.org/wiki/Bootstrapping_(statistics)>`_ using resampling
409with replacement to estimate a confidence interval for the mean of a sample::
410
411   # http://statistics.about.com/od/Applications/a/Example-Of-Bootstrapping.htm
412   from statistics import fmean as mean
413   from random import choices
414
415   data = [41, 50, 29, 37, 81, 30, 73, 63, 20, 35, 68, 22, 60, 31, 95]
416   means = sorted(mean(choices(data, k=len(data))) for i in range(100))
417   print(f'The sample mean of {mean(data):.1f} has a 90% confidence '
418         f'interval from {means[5]:.1f} to {means[94]:.1f}')
419
420Example of a `resampling permutation test
421<https://en.wikipedia.org/wiki/Resampling_(statistics)#Permutation_tests>`_
422to determine the statistical significance or `p-value
423<https://en.wikipedia.org/wiki/P-value>`_ of an observed difference
424between the effects of a drug versus a placebo::
425
426    # Example from "Statistics is Easy" by Dennis Shasha and Manda Wilson
427    from statistics import fmean as mean
428    from random import shuffle
429
430    drug = [54, 73, 53, 70, 73, 68, 52, 65, 65]
431    placebo = [54, 51, 58, 44, 55, 52, 42, 47, 58, 46]
432    observed_diff = mean(drug) - mean(placebo)
433
434    n = 10_000
435    count = 0
436    combined = drug + placebo
437    for i in range(n):
438        shuffle(combined)
439        new_diff = mean(combined[:len(drug)]) - mean(combined[len(drug):])
440        count += (new_diff >= observed_diff)
441
442    print(f'{n} label reshufflings produced only {count} instances with a difference')
443    print(f'at least as extreme as the observed difference of {observed_diff:.1f}.')
444    print(f'The one-sided p-value of {count / n:.4f} leads us to reject the null')
445    print(f'hypothesis that there is no difference between the drug and the placebo.')
446
447Simulation of arrival times and service deliveries for a multiserver queue::
448
449    from heapq import heappush, heappop
450    from random import expovariate, gauss
451    from statistics import mean, median, stdev
452
453    average_arrival_interval = 5.6
454    average_service_time = 15.0
455    stdev_service_time = 3.5
456    num_servers = 3
457
458    waits = []
459    arrival_time = 0.0
460    servers = [0.0] * num_servers  # time when each server becomes available
461    for i in range(100_000):
462        arrival_time += expovariate(1.0 / average_arrival_interval)
463        next_server_available = heappop(servers)
464        wait = max(0.0, next_server_available - arrival_time)
465        waits.append(wait)
466        service_duration = gauss(average_service_time, stdev_service_time)
467        service_completed = arrival_time + wait + service_duration
468        heappush(servers, service_completed)
469
470    print(f'Mean wait: {mean(waits):.1f}.  Stdev wait: {stdev(waits):.1f}.')
471    print(f'Median wait: {median(waits):.1f}.  Max wait: {max(waits):.1f}.')
472
473.. seealso::
474
475   `Statistics for Hackers <https://www.youtube.com/watch?v=Iq9DzN6mvYA>`_
476   a video tutorial by
477   `Jake Vanderplas <https://us.pycon.org/2016/speaker/profile/295/>`_
478   on statistical analysis using just a few fundamental concepts
479   including simulation, sampling, shuffling, and cross-validation.
480
481   `Economics Simulation
482   <http://nbviewer.jupyter.org/url/norvig.com/ipython/Economics.ipynb>`_
483   a simulation of a marketplace by
484   `Peter Norvig <http://norvig.com/bio.html>`_ that shows effective
485   use of many of the tools and distributions provided by this module
486   (gauss, uniform, sample, betavariate, choice, triangular, and randrange).
487
488   `A Concrete Introduction to Probability (using Python)
489   <http://nbviewer.jupyter.org/url/norvig.com/ipython/Probability.ipynb>`_
490   a tutorial by `Peter Norvig <http://norvig.com/bio.html>`_ covering
491   the basics of probability theory, how to write simulations, and
492   how to perform data analysis using Python.
493