Numpy’s random number routines produce pseudo random numbers using combinations of a BitGenerator to create sequences and a Generator to use those sequences to sample from different statistical distributions:
Since Numpy version 1.17.0 the Generator can be initialized with a number of different BitGenerators. It exposes many different probability distributions. See NEP 19 for context on the updated random Numpy number routines. The legacy RandomState random number routines are still available, but limited to a single BitGenerator.
For convenience and backward compatibility, a single RandomState instance’s methods are imported into the numpy.random namespace, see Legacy Random Generation for the complete list.
By default, Generator uses bits provided by PCG64 which has better statistical properties than the legacy mt19937 random number generator in RandomState.
# Uses the old numpy.random.RandomState from numpy import random random.standard_normal()
Generator can be used as a replacement for RandomState. Both class instances now hold a internal BitGenerator instance to provide the bit stream, it is accessible as gen.bit_generator. Some long-overdue API cleanup means that legacy and compatibility methods have been removed from Generator
RandomState | Generator | Notes |
random_sample, | random | Compatible with random.random
|
rand | ||
randint, | integers | Add an endpoint kwarg |
random_integers | ||
tomaxint | removed |
|
seed | removed | Use spawn
|
See new-or-different for more information
# As replacement for RandomState(); default_rng() instantiates Generator with # the default PCG64 BitGenerator. from numpy.random import default_rng rg = default_rng() rg.standard_normal() rg.bit_generator
Something like the following code can be used to support both RandomState and Generator, with the understanding that the interfaces are slightly different
try:
rg_integers = rg.integers
except AttributeError:
rg_integers = rg.randint
a = rg_integers(1000)
Seeds can be passed to any of the BitGenerators. The provided value is mixed via SeedSequence to spread a possible sequence of seeds across a wider range of initialization states for the BitGenerator. Here PCG64 is used and is wrapped with a Generator.
from numpy.random import Generator, PCG64 rg = Generator(PCG64(12345)) rg.standard_normal()
The new infrastructure takes a different approach to producing random numbers from the RandomState object. Random number generation is separated into two components, a bit generator and a random generator.
The BitGenerator has a limited set of responsibilities. It manages state and provides functions to produce random doubles and random unsigned 32- and 64-bit values.
The random generator takes the bit generator-provided stream and transforms them into more useful distributions, e.g., simulated normal random values. This structure allows alternative bit generators to be used with little code duplication.
The Generator is the user-facing object that is nearly identical to RandomState. The canonical method to initialize a generator passes a PCG64 bit generator as the sole argument.
from numpy.random import default_rng rg = default_rng(12345) rg.random()
One can also instantiate Generator directly with a BitGenerator instance. To use the older MT19937 algorithm, one can instantiate it directly and pass it to Generator.
from numpy.random import Generator, MT19937 rg = Generator(MT19937(12345)) rg.random()
Warning
The Box-Muller method used to produce NumPy’s normals is no longer available in Generator. It is not possible to reproduce the exact random values using Generator for the normal distribution or any other distribution that relies on the normal such as the RandomState.gamma or RandomState.standard_t. If you require bitwise backward compatible streams, use RandomState.
dtype argument that accepts np.float32 or np.float64 to produce either single or double prevision uniform random variables for select distributionsout argument that allows existing arrays to be filled for select distributionsrandom_entropy provides access to the system source of randomness that is used in cryptographic applications (e.g., /dev/urandom on Unix).ctypes) and CFFI (cffi). This allows the bit generators to be used in numba.integers is now the canonical way to generate integer random numbers from a discrete uniform distribution. The rand and randn methods are only available through the legacy RandomState. The endpoint keyword can be used to specify open or closed intervals. This replaces both randint and the deprecated random_integers.random is now the canonical way to generate floating-point random numbers, which replaces RandomState.random_sample, RandomState.sample, and RandomState.ranf. This is consistent with Python’s random.random.SeedSequence to convert seeds into initialized states.See What’s New or Different for a complete list of improvements and differences from the traditional Randomstate.
The included generators can be used in parallel, distributed applications in one of three ways:
This package was developed independently of NumPy and was integrated in version 1.17.0. The original repo is at https://github.com/bashtage/randomgen.
© 2005–2019 NumPy Developers
Licensed under the 3-clause BSD License.
https://docs.scipy.org/doc/numpy-1.17.0/reference/random/index.html