Multithreaded Generation ======================== The four core distributions (:meth:`~.Generator.random`, :meth:`~.Generator.standard_normal`, :meth:`~.Generator.standard_exponential`, and :meth:`~.Generator.standard_gamma`) all allow existing arrays to be filled using the ``out`` keyword argument. Existing arrays need to be contiguous and well-behaved (writable and aligned). Under normal circumstances, arrays created using the common constructors such as :meth:`numpy.empty` will satisfy these requirements. This example makes use of Python 3 :mod:`concurrent.futures` to fill an array using multiple threads. Threads are long-lived so that repeated calls do not require any additional overheads from thread creation. The random numbers generated are reproducible in the sense that the same seed will produce the same outputs, given that the number of threads does not change. .. code-block:: ipython from numpy.random import default_rng, SeedSequence import multiprocessing import concurrent.futures import numpy as np class MultithreadedRNG: def __init__(self, n, seed=None, threads=None): if threads is None: threads = multiprocessing.cpu_count() self.threads = threads seq = SeedSequence(seed) self._random_generators = [default_rng(s) for s in seq.spawn(threads)] self.n = n self.executor = concurrent.futures.ThreadPoolExecutor(threads) self.values = np.empty(n) self.step = np.ceil(n / threads).astype(np.int_) def fill(self): def _fill(random_state, out, first, last): random_state.standard_normal(out=out[first:last]) futures = {} for i in range(self.threads): args = (_fill, self._random_generators[i], self.values, i * self.step, (i + 1) * self.step) futures[self.executor.submit(*args)] = i concurrent.futures.wait(futures) def __del__(self): self.executor.shutdown(False) The multithreaded random number generator can be used to fill an array. The ``values`` attributes shows the zero-value before the fill and the random value after. .. code-block:: ipython In [2]: mrng = MultithreadedRNG(10000000, seed=12345) ...: print(mrng.values[-1]) Out[2]: 0.0 In [3]: mrng.fill() ...: print(mrng.values[-1]) Out[3]: 2.4545724517479104 The time required to produce using multiple threads can be compared to the time required to generate using a single thread. .. code-block:: ipython In [4]: print(mrng.threads) ...: %timeit mrng.fill() Out[4]: 4 ...: 32.8 ms ± 2.71 ms per loop (mean ± std. dev. of 7 runs, 10 loops each) The single threaded call directly uses the BitGenerator. .. code-block:: ipython In [5]: values = np.empty(10000000) ...: rg = default_rng() ...: %timeit rg.standard_normal(out=values) Out[5]: 99.6 ms ± 222 µs per loop (mean ± std. dev. of 7 runs, 10 loops each) The gains are substantial and the scaling is reasonable even for arrays that are only moderately large. The gains are even larger when compared to a call that does not use an existing array due to array creation overhead. .. code-block:: ipython In [6]: rg = default_rng() ...: %timeit rg.standard_normal(10000000) Out[6]: 125 ms ± 309 µs per loop (mean ± std. dev. of 7 runs, 10 loops each) Note that if `threads` is not set by the user, it will be determined by `multiprocessing.cpu_count()`. .. code-block:: ipython In [7]: # simulate the behavior for `threads=None`, if the machine had only one thread ...: mrng = MultithreadedRNG(10000000, seed=12345, threads=1) ...: print(mrng.values[-1]) Out[7]: 1.1800150052158556