I have two pieces of code that I'm using to learn about multiprocessing in Python 3.1. My goal is to use 100% of all the available processors. However, the code snippets here only reach 30% - 50% on all processors.

Is there anyway to 'force' python to use all 100%? Is the OS (windows 7, 64bit) limiting Python's access to the processors? While the code snippets below are running, I open the task manager and watch the processor's spike, but never reach and maintain 100%. In addition to that, I can see multiple python.exe processes created and destroyed along the way. How do these processes relate to processors? For example, if I spawn 4 processes, each process isn't using it's own core. Instead, what are the processes using? Are they sharing all cores? And if so, is it the OS that is forcing the processes to share the cores?

code snippet 1

import multiprocessing

def worker():
    #worker function
    print ('Worker')
    x = 0
    while x < 1000:
        x += 1

if __name__ == '__main__':
    jobs = []
    for i in range(50):
        p = multiprocessing.Process(target=worker)

code snippet 2

from multiprocessing import Process, Lock

def f(l, i):
    print('worker ', i)
    x = 0
    while x < 1000:
        x += 1

if __name__ == '__main__': 
    lock = Lock()
    for num in range(50):
        Process(target=f, args=(lock, num)).start()
  • 19
    Remove the print statements. They force your process to pause and do IO instead of using pure CPU. Commented Apr 25, 2011 at 23:50
  • 1
    The OS is responsible for scheduling your processes across all available cores. Processes aren't tied to specific cores and can (and will) be switched between cores by the OS. That's kind of the point of this whole "multitasking" thing that the OS is helping you do. However, if you have 4 cores, and 4 CPU bound processes you should be able to utilize all 4 cores.
    – stderr
    Commented Apr 26, 2011 at 4:10
  • 1
    Spike Gronim's comment is the pertinent point here. There are several confounding problems coming into play here. One of them is properly setting CPU affinity as others have mentioned it, but more importantly, if your code is blocking on IO (in this case print), it will not be utilizing the CPU. You may be thinking of REALTIME_PRIORITY_CLASS on windows. But this is not what you want to do and simply won't solve your problem, as all it guarantees is that your thread will not be pre-empted. But blocking on IO will still result in the same underutilization of CPU.
    – MB.
    Commented Mar 3, 2017 at 22:19

6 Answers 6


To use 100% of all cores, do not create and destroy new processes.

Create a few processes per core and link them with a pipeline.

At the OS-level, all pipelined processes run concurrently.

The less you write (and the more you delegate to the OS) the more likely you are to use as many resources as possible.

python p1.py | python p2.py | python p3.py | python p4.py ...

Will make maximal use of your CPU.

  • 19
    What you have above is what Python's multiprocessing module will do for you anyways.
    – ktdrv
    Commented Apr 25, 2011 at 23:44
  • 2
    A few processes which start once and move data through them is often more efficient than trying to start a large number of processes. Also, the OS schedules this very, very nicely, since it's built on OS API's directly with no wrappers or helpers.
    – S.Lott
    Commented Apr 25, 2011 at 23:54
  • I don't completely understand what you mean by 'pipelined processes', but it's enough to get me searching in the right direction. If you could post a code snippet illustrating this pipelined approach - I'd be eternally grateful. :)
    – Ggggggg
    Commented Apr 26, 2011 at 15:29
  • I did provide a code snippet. What more do you want? You'd have to provide some kind of concrete problem. But each stage simply reads stdin and writes stdout. Not much to it. It's standard Unix/Linux design philosophy. Been around for decades. Still works.
    – S.Lott
    Commented Apr 26, 2011 at 16:03
  • Ah, it's making more sense to me now. Sorry for bothering you.
    – Ggggggg
    Commented Apr 26, 2011 at 17:47

You can use psutil to pin each process spawned by multiprocessing to a specific CPU:

import multiprocessing as mp
import psutil

def spawn():
    procs = list()
    n_cpus = psutil.cpu_count()
    for cpu in range(n_cpus):
        affinity = [cpu]
        d = dict(affinity=affinity)
        p = mp.Process(target=run_child, kwargs=d)
    for p in procs:

def run_child(affinity):
    proc = psutil.Process()  # get self pid
    print(f'PID: {proc.pid}')
    aff = proc.cpu_affinity()
    print(f'Affinity before: {aff}')
    aff = proc.cpu_affinity()
    print(f'Affinity after: {aff}')

if __name__ == '__main__':

Note: As commented, psutil.Process.cpu_affinity is not available on macOS.

  • 3
    proc.cpu_affinity works on Windows, Linux and FreeBSD only.
    – fips
    Commented Jan 29, 2018 at 11:51

Minimum example in pure Python:

def f(x):
    while 1:
        # -------optional-------
        x += 10000  # linear growth (use x *= 1.01 for exponential growth)
        y = list(range(int(x)))  # to use up RAM
        # ---end of optional----
        pass  # infinite loop to use up CPU

if __name__ == '__main__':  # name guard to avoid recursive fork
    import multiprocessing as mp
    # mp.set_start_method('fork')  # to run in terminal directly on macos
    n = mp.cpu_count() * 32  # guard against counting only active cores
    with mp.Pool(n) as pool:
        pool.map(f, range(n))

Usage: to warm up on a cold day (but feel free to change the loop to something less pointless.)

Warning: to exit, don't pull the plug or hold the power button, Ctrl-C instead.

  • In python 3.6 32-bit on Windows 10 that code gives: "RuntimeError: An attempt has been made to start a new process before the current process has finished its bootstrapping phase."
    – EricP
    Commented Jun 3, 2019 at 2:41
  • Thank you. I think adding if name == 'main' is what fixed it when I was working on this two days ago.
    – EricP
    Commented Jun 5, 2019 at 23:22

Regarding code snippet 1: How many cores / processors do you have on your test machine? It isn't doing you any good to run 50 of these processes if you only have 2 CPU cores. In fact you're forcing the OS to spend more time context switching to move processes on and off the CPU than do actual work.

Try reducing the number of spawned processes to the number of cores. So "for i in range(50):" should become something like:

import os;
# assuming you're on windows:
for i in range(int(os.environ["NUMBER_OF_PROCESSORS"])):

Regarding code snippet 2: You're using a multiprocessing.Lock which can only be held by a single process at a time so you're completely limiting all the parallelism in this version of the program. You've serialized things so that process 1 through 50 start, a random process (say process 7) acquires the lock. Processes 1-6, and 8-50 all sit on the line:


While they sit there they are just waiting for the lock to be released. Depending on the implementation of the Lock primitive they are probably not using any CPU, they're just sitting there using system resources like RAM but are doing no useful work with the CPU. Process 7 counts and prints to 1000 and then releases the lock. The OS then is free to schedule randomly one of the remaining 49 processes to run. Whichever one it wakes up first will acquire the lock next and run while the remaining 48 wait on the Lock. This'll continue for the whole program.

Basically, code snippet 2 is an example of what makes concurrency hard. You have to manage access by lots of processes or threads to some shared resource. In this particular case there really is no reason that these processes need to wait on each other though.

So of these two, Snippet 1 is closer to more efficiently utilitizing the CPU. I think properly tuning the number of processes to match the number of cores will yield a much improved result.

  • 6
    An alternative to using the environment variable from multiprocessing import cpu_count; for i in xrange(cpu_count()): ...
    – Andy
    Commented Aug 12, 2011 at 16:38

I'd recommend using the Joblib library, it's a good library for multiprocessing, used in many ML applications, in sklearn etc.

from joblib import Parallel, delayed

Parallel(n_jobs=-1, prefer="processes", verbose=6)(
    delayed(function_name)(parameter1, parameter2, ...)
    for parameter1, parameter2, ... in object

Where n_jobs is the number of concurrent jobs. Set n=-1 if you want to use all available cores on the machine that you're running your code.

More details on parameters here: https://joblib.readthedocs.io/en/latest/generated/joblib.Parallel.html

In your case, a possible implementation would be:

def worker(i):
    print('worker ', i)
    x = 0
    while x < 1000:
        x += 1

Parallel(n_jobs=-1, prefer="processes", verbose=6)(
        for num in range(50)
  • I can't get this to user anything more than one core, much like pool.map. Any hints on how to perhaps split the tasks up further and acheive max cpu would be great. Commented Jan 7, 2021 at 23:31
  • 1
    Try using backend="multiprocessing" instead of prefer="processes". You can also control the number of jobs using n_jobs, setting a specific number of cores if you'd like.
    – Robert
    Commented Jan 8, 2021 at 21:59
  • Thanks, I'll give it a go does this work on Linux and windows? Commented Jan 9, 2021 at 3:07
  • 1
    It should work, though there have been known issues in the past for Windows, and there can be weird interactions with other programs that also use concurrency. I'd recommend having a look here, as it describes some of the issues with multi-processing.
    – Robert
    Commented Jan 9, 2021 at 16:03
  • I'm testing today and will have results. Currently only able to get 4 concurrent threads on linux (32 cores available) Commented Jan 11, 2021 at 11:48

To answer your question(s):

Is there anyway to 'force' python to use all 100%?

Not that I've heard of

Is the OS (windows 7, 64bit) limiting Python's access to the processors?

Yes and No, Yes: if it python took 100%, windows will freeze. No, you can grant python Admin Priviledges which will result in a lockup.

How do these processes relate to processors?

They don't, technically on the OS level those python "processes" are threads which is processed by the OS Handler as it needs handling.

Instead, what are the processes using? Are they sharing all cores? And if so, is it the OS that is forcing the processes to share the cores?

They are sharing all cores, unless you start a single python instance that has affinity set to a certain core (in a multicore system) your processes will be split into which-ever-core-is-free processing. So yes, the OS is forcing the core sharing by default (or python is technically)

if you are interested in python core affinity, check out the affinity package for python.

  • multiprocessing.Process create a separate process with an API similar to that of threading.Thread, so those "python "processes"" are really new processes.
    – stderr
    Commented Apr 26, 2011 at 3:44

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