Random Generator#
The Generator
provides access to
a wide range of distributions, and served as a replacement for
RandomState
. The main difference between
the two is that Generator
relies on an additional BitGenerator to
manage state and generate the random bits, which are then transformed into
random values from useful distributions. The default BitGenerator used by
Generator
is PCG64
. The BitGenerator
can be changed by passing an instantized BitGenerator to Generator
.
- numpy.random.default_rng()#
Construct a new Generator with the default BitGenerator (PCG64).
- Parameters
- seed{None, int, array_like[ints], SeedSequence, BitGenerator, Generator}, optional
A seed to initialize the
BitGenerator
. If None, then fresh, unpredictable entropy will be pulled from the OS. If anint
orarray_like[ints]
is passed, then it will be passed toSeedSequence
to derive the initialBitGenerator
state. One may also pass in aSeedSequence
instance. Additionally, when passed aBitGenerator
, it will be wrapped byGenerator
. If passed aGenerator
, it will be returned unaltered.
- Returns
- Generator
The initialized generator object.
Notes
If
seed
is not aBitGenerator
or aGenerator
, a newBitGenerator
is instantiated. This function does not manage a default global instance.Examples
default_rng
is the recommended constructor for the random number classGenerator
. Here are several ways we can construct a random number generator usingdefault_rng
and theGenerator
class.Here we use
default_rng
to generate a random float:>>> import numpy as np >>> rng = np.random.default_rng(12345) >>> print(rng) Generator(PCG64) >>> rfloat = rng.random() >>> rfloat 0.22733602246716966 >>> type(rfloat) <class 'float'>
Here we use
default_rng
to generate 3 random integers between 0 (inclusive) and 10 (exclusive):>>> import numpy as np >>> rng = np.random.default_rng(12345) >>> rints = rng.integers(low=0, high=10, size=3) >>> rints array([6, 2, 7]) >>> type(rints[0]) <class 'numpy.int64'>
Here we specify a seed so that we have reproducible results:
>>> import numpy as np >>> rng = np.random.default_rng(seed=42) >>> print(rng) Generator(PCG64) >>> arr1 = rng.random((3, 3)) >>> arr1 array([[0.77395605, 0.43887844, 0.85859792], [0.69736803, 0.09417735, 0.97562235], [0.7611397 , 0.78606431, 0.12811363]])
If we exit and restart our Python interpreter, we’ll see that we generate the same random numbers again:
>>> import numpy as np >>> rng = np.random.default_rng(seed=42) >>> arr2 = rng.random((3, 3)) >>> arr2 array([[0.77395605, 0.43887844, 0.85859792], [0.69736803, 0.09417735, 0.97562235], [0.7611397 , 0.78606431, 0.12811363]])
- class numpy.random.Generator(bit_generator)#
Container for the BitGenerators.
Generator
exposes a number of methods for generating random numbers drawn from a variety of probability distributions. In addition to the distribution-specific arguments, each method takes a keyword argument size that defaults toNone
. If size isNone
, then a single value is generated and returned. If size is an integer, then a 1-D array filled with generated values is returned. If size is a tuple, then an array with that shape is filled and returned.The function
numpy.random.default_rng
will instantiate aGenerator
with numpy’s defaultBitGenerator
.No Compatibility Guarantee
Generator
does not provide a version compatibility guarantee. In particular, as better algorithms evolve the bit stream may change.- Parameters
- bit_generatorBitGenerator
BitGenerator to use as the core generator.
See also
default_rng
Recommended constructor for
Generator
.
Notes
The Python stdlib module
random
contains pseudo-random number generator with a number of methods that are similar to the ones available inGenerator
. It uses Mersenne Twister, and this bit generator can be accessed usingMT19937
.Generator
, besides being NumPy-aware, has the advantage that it provides a much larger number of probability distributions to choose from.Examples
>>> from numpy.random import Generator, PCG64 >>> rng = Generator(PCG64()) >>> rng.standard_normal() -0.203 # random
Accessing the BitGenerator#
Gets the bit generator instance used by the generator |
Simple random data#
|
Return random integers from low (inclusive) to high (exclusive), or if endpoint=True, low (inclusive) to high (inclusive). |
|
Return random floats in the half-open interval [0.0, 1.0). |
|
Generates a random sample from a given array |
|
Return random bytes. |
Permutations#
The methods for randomly permuting a sequence are
|
Modify an array or sequence in-place by shuffling its contents. |
|
Randomly permute a sequence, or return a permuted range. |
|
Randomly permute x along axis axis. |
The following table summarizes the behaviors of the methods.
method |
copy/in-place |
axis handling |
---|---|---|
shuffle |
in-place |
as if 1d |
permutation |
copy |
as if 1d |
permuted |
either (use ‘out’ for in-place) |
axis independent |
The following subsections provide more details about the differences.
In-place vs. copy#
The main difference between Generator.shuffle
and Generator.permutation
is that Generator.shuffle
operates in-place, while Generator.permutation
returns a copy.
By default, Generator.permuted
returns a copy. To operate in-place with
Generator.permuted
, pass the same array as the first argument and as
the value of the out
parameter. For example,
>>> rng = np.random.default_rng()
>>> x = np.arange(0, 15).reshape(3, 5)
>>> x
array([[ 0, 1, 2, 3, 4],
[ 5, 6, 7, 8, 9],
[10, 11, 12, 13, 14]])
>>> y = rng.permuted(x, axis=1, out=x)
>>> x
array([[ 1, 0, 2, 4, 3], # random
[ 6, 7, 8, 9, 5],
[10, 14, 11, 13, 12]])
Note that when out
is given, the return value is out
:
>>> y is x
True
Handling the axis
parameter#
An important distinction for these methods is how they handle the axis
parameter. Both Generator.shuffle
and Generator.permutation
treat the
input as a one-dimensional sequence, and the axis
parameter determines
which dimension of the input array to use as the sequence. In the case of a
two-dimensional array, axis=0
will, in effect, rearrange the rows of the
array, and axis=1
will rearrange the columns. For example
>>> rng = np.random.default_rng()
>>> x = np.arange(0, 15).reshape(3, 5)
>>> x
array([[ 0, 1, 2, 3, 4],
[ 5, 6, 7, 8, 9],
[10, 11, 12, 13, 14]])
>>> rng.permutation(x, axis=1)
array([[ 1, 3, 2, 0, 4], # random
[ 6, 8, 7, 5, 9],
[11, 13, 12, 10, 14]])
Note that the columns have been rearranged “in bulk”: the values within each column have not changed.
The method Generator.permuted
treats the axis
parameter similar to
how numpy.sort
treats it. Each slice along the given axis is shuffled
independently of the others. Compare the following example of the use of
Generator.permuted
to the above example of Generator.permutation
:
>>> rng.permuted(x, axis=1)
array([[ 1, 0, 2, 4, 3], # random
[ 5, 7, 6, 9, 8],
[10, 14, 12, 13, 11]])
In this example, the values within each row (i.e. the values along
axis=1
) have been shuffled independently. This is not a “bulk”
shuffle of the columns.
Shuffling non-NumPy sequences#
Generator.shuffle
works on non-NumPy sequences. That is, if it is given
a sequence that is not a NumPy array, it shuffles that sequence in-place.
For example,
>>> rng = np.random.default_rng()
>>> a = ['A', 'B', 'C', 'D', 'E']
>>> rng.shuffle(a) # shuffle the list in-place
>>> a
['B', 'D', 'A', 'E', 'C'] # random
Distributions#
|
Draw samples from a Beta distribution. |
|
Draw samples from a binomial distribution. |
|
Draw samples from a chi-square distribution. |
|
Draw samples from the Dirichlet distribution. |
|
Draw samples from an exponential distribution. |
|
Draw samples from an F distribution. |
|
Draw samples from a Gamma distribution. |
|
Draw samples from the geometric distribution. |
|
Draw samples from a Gumbel distribution. |
|
Draw samples from a Hypergeometric distribution. |
|
Draw samples from the Laplace or double exponential distribution with specified location (or mean) and scale (decay). |
|
Draw samples from a logistic distribution. |
|
Draw samples from a log-normal distribution. |
|
Draw samples from a logarithmic series distribution. |
|
Draw samples from a multinomial distribution. |
|
Generate variates from a multivariate hypergeometric distribution. |
|
Draw random samples from a multivariate normal distribution. |
|
Draw samples from a negative binomial distribution. |
|
Draw samples from a noncentral chi-square distribution. |
|
Draw samples from the noncentral F distribution. |
|
Draw random samples from a normal (Gaussian) distribution. |
|
Draw samples from a Pareto II or Lomax distribution with specified shape. |
|
Draw samples from a Poisson distribution. |
|
Draws samples in [0, 1] from a power distribution with positive exponent a - 1. |
|
Draw samples from a Rayleigh distribution. |
|
Draw samples from a standard Cauchy distribution with mode = 0. |
|
Draw samples from the standard exponential distribution. |
|
Draw samples from a standard Gamma distribution. |
|
Draw samples from a standard Normal distribution (mean=0, stdev=1). |
|
Draw samples from a standard Student's t distribution with df degrees of freedom. |
|
Draw samples from the triangular distribution over the interval |
|
Draw samples from a uniform distribution. |
|
Draw samples from a von Mises distribution. |
|
Draw samples from a Wald, or inverse Gaussian, distribution. |
|
Draw samples from a Weibull distribution. |
|
Draw samples from a Zipf distribution. |