| |
| :mod:`random` --- Generate pseudo-random numbers |
| ================================================ |
| |
| .. module:: random |
| :synopsis: Generate pseudo-random numbers with various common distributions. |
| |
| |
| This module implements pseudo-random number generators for various |
| distributions. |
| |
| For integers, uniform selection from a range. For sequences, uniform selection |
| of a random element, a function to generate a random permutation of a list |
| in-place, and a function for random sampling without replacement. |
| |
| On the real line, there are functions to compute uniform, normal (Gaussian), |
| lognormal, negative exponential, gamma, and beta distributions. For generating |
| distributions of angles, the von Mises distribution is available. |
| |
| Almost all module functions depend on the basic function :func:`random`, which |
| generates a random float uniformly in the semi-open range [0.0, 1.0). Python |
| uses the Mersenne Twister as the core generator. It produces 53-bit precision |
| floats and has a period of 2\*\*19937-1. The underlying implementation in C is |
| both fast and threadsafe. The Mersenne Twister is one of the most extensively |
| tested random number generators in existence. However, being completely |
| deterministic, it is not suitable for all purposes, and is completely unsuitable |
| for cryptographic purposes. |
| |
| The functions supplied by this module are actually bound methods of a hidden |
| instance of the :class:`random.Random` class. You can instantiate your own |
| instances of :class:`Random` to get generators that don't share state. |
| |
| Class :class:`Random` can also be subclassed if you want to use a different |
| basic generator of your own devising: in that case, override the :meth:`random`, |
| :meth:`seed`, :meth:`getstate`, and :meth:`setstate`. |
| Optionally, a new generator can supply a :meth:`getrandbits` method --- this |
| allows :meth:`randrange` to produce selections over an arbitrarily large range. |
| |
| |
| Bookkeeping functions: |
| |
| |
| .. function:: seed([x]) |
| |
| Initialize the basic random number generator. Optional argument *x* can be any |
| :term:`hashable` object. If *x* is omitted or ``None``, current system time is used; |
| current system time is also used to initialize the generator when the module is |
| first imported. If randomness sources are provided by the operating system, |
| they are used instead of the system time (see the :func:`os.urandom` function |
| for details on availability). |
| |
| If *x* is not ``None`` or an int, ``hash(x)`` is used instead. If *x* is an |
| int, *x* is used directly. |
| |
| |
| .. function:: getstate() |
| |
| Return an object capturing the current internal state of the generator. This |
| object can be passed to :func:`setstate` to restore the state. |
| |
| |
| .. function:: setstate(state) |
| |
| *state* should have been obtained from a previous call to :func:`getstate`, and |
| :func:`setstate` restores the internal state of the generator to what it was at |
| the time :func:`setstate` was called. |
| |
| |
| .. function:: jumpahead(n) |
| |
| Change the internal state to one different from and likely far away from the |
| current state. *n* is a non-negative integer which is used to scramble the |
| current state vector. This is most useful in multi-threaded programs, in |
| conjunction with multiple instances of the :class:`Random` class: |
| :meth:`setstate` or :meth:`seed` can be used to force all instances into the |
| same internal state, and then :meth:`jumpahead` can be used to force the |
| instances' states far apart. |
| |
| |
| .. function:: getrandbits(k) |
| |
| Returns a python integer with *k* random bits. This method is supplied with |
| the MersenneTwister generator and some other generators may also provide it |
| as an optional part of the API. When available, :meth:`getrandbits` enables |
| :meth:`randrange` to handle arbitrarily large ranges. |
| |
| |
| Functions for integers: |
| |
| .. function:: randrange([start,] stop[, step]) |
| |
| Return a randomly selected element from ``range(start, stop, step)``. This is |
| equivalent to ``choice(range(start, stop, step))``, but doesn't actually build a |
| range object. |
| |
| |
| .. function:: randint(a, b) |
| |
| Return a random integer *N* such that ``a <= N <= b``. |
| |
| |
| Functions for sequences: |
| |
| .. function:: choice(seq) |
| |
| Return a random element from the non-empty sequence *seq*. If *seq* is empty, |
| raises :exc:`IndexError`. |
| |
| |
| .. function:: shuffle(x[, random]) |
| |
| Shuffle the sequence *x* in place. The optional argument *random* is a |
| 0-argument function returning a random float in [0.0, 1.0); by default, this is |
| the function :func:`random`. |
| |
| Note that for even rather small ``len(x)``, the total number of permutations of |
| *x* is larger than the period of most random number generators; this implies |
| that most permutations of a long sequence can never be generated. |
| |
| |
| .. function:: sample(population, k) |
| |
| Return a *k* length list of unique elements chosen from the population sequence |
| or set. Used for random sampling without replacement. |
| |
| 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 :term:`hashable` or unique. If the population |
| contains repeats, then each occurrence is a possible selection in the sample. |
| |
| To choose a sample from a range of integers, use an :func:`range` object as an |
| argument. This is especially fast and space efficient for sampling from a large |
| population: ``sample(range(10000000), 60)``. |
| |
| The following functions generate specific real-valued distributions. Function |
| parameters are named after the corresponding variables in the distribution's |
| equation, as used in common mathematical practice; most of these equations can |
| be found in any statistics text. |
| |
| |
| .. function:: random() |
| |
| Return the next random floating point number in the range [0.0, 1.0). |
| |
| |
| .. function:: uniform(a, b) |
| |
| Return a random floating point number *N* such that ``a <= N < b`` for |
| ``a <= b`` and ``b <= N < a`` for ``b < a``. |
| |
| |
| .. function:: triangular(low, high, mode) |
| |
| Return a random floating point number *N* such that ``low <= N < high`` and |
| with the specified *mode* between those bounds. The *low* and *high* bounds |
| default to zero and one. The *mode* argument defaults to the midpoint |
| between the bounds, giving a symmetric distribution. |
| |
| |
| .. function:: betavariate(alpha, beta) |
| |
| Beta distribution. Conditions on the parameters are ``alpha > 0`` and ``beta > |
| 0``. Returned values range between 0 and 1. |
| |
| |
| .. function:: expovariate(lambd) |
| |
| 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. |
| |
| |
| .. function:: gammavariate(alpha, beta) |
| |
| Gamma distribution. (*Not* the gamma function!) Conditions on the parameters |
| are ``alpha > 0`` and ``beta > 0``. |
| |
| |
| .. function:: gauss(mu, sigma) |
| |
| Gaussian distribution. *mu* is the mean, and *sigma* is the standard deviation. |
| This is slightly faster than the :func:`normalvariate` function defined below. |
| |
| |
| .. function:: lognormvariate(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. |
| |
| |
| .. function:: normalvariate(mu, sigma) |
| |
| Normal distribution. *mu* is the mean, and *sigma* is the standard deviation. |
| |
| |
| .. function:: vonmisesvariate(mu, kappa) |
| |
| *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*. |
| |
| |
| .. function:: paretovariate(alpha) |
| |
| Pareto distribution. *alpha* is the shape parameter. |
| |
| |
| .. function:: weibullvariate(alpha, beta) |
| |
| Weibull distribution. *alpha* is the scale parameter and *beta* is the shape |
| parameter. |
| |
| |
| Alternative Generators: |
| |
| .. class:: SystemRandom([seed]) |
| |
| Class that uses the :func:`os.urandom` function for generating random numbers |
| from sources provided by the operating system. Not available on all systems. |
| Does not rely on software state and sequences are not reproducible. Accordingly, |
| the :meth:`seed` and :meth:`jumpahead` methods have no effect and are ignored. |
| The :meth:`getstate` and :meth:`setstate` methods raise |
| :exc:`NotImplementedError` if called. |
| |
| |
| Examples of basic usage:: |
| |
| >>> random.random() # Random float x, 0.0 <= x < 1.0 |
| 0.37444887175646646 |
| >>> random.uniform(1, 10) # Random float x, 1.0 <= x < 10.0 |
| 1.1800146073117523 |
| >>> random.randint(1, 10) # Integer from 1 to 10, endpoints included |
| 7 |
| >>> random.randrange(0, 101, 2) # Even integer from 0 to 100 |
| 26 |
| >>> random.choice('abcdefghij') # Choose a random element |
| 'c' |
| |
| >>> items = [1, 2, 3, 4, 5, 6, 7] |
| >>> random.shuffle(items) |
| >>> items |
| [7, 3, 2, 5, 6, 4, 1] |
| |
| >>> random.sample([1, 2, 3, 4, 5], 3) # Choose 3 elements |
| [4, 1, 5] |
| |
| |
| |
| .. seealso:: |
| |
| M. Matsumoto and T. Nishimura, "Mersenne Twister: A 623-dimensionally |
| equidistributed uniform pseudorandom number generator", ACM Transactions on |
| Modeling and Computer Simulation Vol. 8, No. 1, January pp.3-30 1998. |
| |
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