Using more worker processes than there are cores

二次信任 提交于 2020-12-12 02:06:40

问题


This example from PYMOTW gives an example of using multiprocessing.Pool() where the processes argument (number of worker processes) passed is twice the number of cores on the machine.

pool_size = multiprocessing.cpu_count() * 2

(The class will otherwise default to just cpu_count().)

Is there any validity to this? What is the effect of creating more workers than there are cores? Is there ever a case to be made for doing this, or will it perhaps impose additional overhead in the wrong direction? I am curious as to why it would be included consistently in examples from what I consider to be a reputable site.

In an initial test, it actually seems to slow things down a bit:

$ python -m timeit -n 25 -r 3 'import double_cpus; double_cpus.main()'
25 loops, best of 3: 266 msec per loop
$ python -m timeit -n 25 -r 3 'import default_cpus; default_cpus.main()'
25 loops, best of 3: 226 msec per loop

double_cpus.py:

import multiprocessing

def do_calculation(n):
    for i in range(n):
        i ** 2

def main():
    with multiprocessing.Pool(
        processes=multiprocessing.cpu_count() * 2,
        maxtasksperchild=2,
    ) as pool:
        pool.map(do_calculation, range(1000))

default_cpus.py:

def main():
    # `processes` will default to cpu_count()
    with multiprocessing.Pool(
        maxtasksperchild=2,
    ) as pool:
        pool.map(do_calculation, range(1000))

回答1:


Doing this can make sense if your job is not purely cpu-bound, but also involves some I/O.

The computation in your example is also too short for a reasonable benchmark, the overhead of just creating more processes in the first place dominates.

I modified your calculation to let it iterate over a range of 10M, while calculating an if-condition and let it take a nap in case it evaluates to True, which happens n_sleep-times. That way a total sleep of sleep_sec_total can be injected into the computation.

# default_cpus.py
import time
import multiprocessing


def do_calculation(iterations, n_sleep, sleep_sec):
    for i in range(iterations):
        if i % (iterations / n_sleep) == 0:
            time.sleep(sleep_sec)


def main(sleep_sec_total):

    iterations = int(10e6)
    n_sleep = 100
    sleep_sec = sleep_sec_total / n_sleep
    tasks = [(iterations, n_sleep, sleep_sec)] * 20

    with multiprocessing.Pool(
        maxtasksperchild=2,
    ) as pool:
        pool.starmap(do_calculation, tasks)

# double_cpus.py
...

def main(sleep_sec_total):

    iterations = int(10e6)
    n_sleep = 100
    sleep_sec = sleep_sec_total / n_sleep
    tasks = [(iterations, n_sleep, sleep_sec)] * 20

    with multiprocessing.Pool(
        processes=multiprocessing.cpu_count() * 2,
        maxtasksperchild=2,
    ) as pool:
        pool.starmap(do_calculation, tasks)

I ran the benchmark with sleep_sec_total=0 (purely cpu-bound) and with sleep_sec_total=2 for both modules.

Results with sleep_sec_total=0:

$ python -m timeit -n 5 -r 3 'import default_cpus; default_cpus.main(0)'
5 loops, best of 3: 15.2 sec per loop

$ python -m timeit -n 5 -r 3 'import double_cpus; double_cpus.main(0)'
5 loops, best of 3: 15.2 sec per loop

Given a reasonable computation-size, you'll observe close to no difference between default- and double-cpus for a purely cpu-bound task. Here it happened, that both tests had the same best-time.

Results with sleep_sec_total=2:

$ python -m timeit -n 5 -r 3 'import default_cpus; default_cpus.main(2)'
5 loops, best of 3: 20.5 sec per loop
$ python -m timeit -n 5 -r 3 'import double_cpus; double_cpus.main(2)'
5 loops, best of 3: 17.7 sec per loop

Now with adding 2 seconds of sleep as a dummy for I/0, the picture looks different. Using double as much processes gave a speed up of about 3 seconds compared to the default.




回答2:


If you task is I/O bound (such as waiting for a database, a network service), then making more threads than there are processors actually increases your throughput.

This is because while your thread is waiting on I/O the processor can actually do work on other threads.

If you have a CPU heavy task, then more processors will actually slow it down.



来源:https://stackoverflow.com/questions/53615394/using-more-worker-processes-than-there-are-cores

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