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Is there a Pool class for worker threads, similar to the multiprocessing module's Pool class?

I like for example the easy way to parallelize a map function

def long_running_func(p):

p = multiprocessing.Pool(4)
xs =, range(100))

however I would like to do it without the overhead of creating new processes.

I know about the GIL. However, in my usecase, the function will be an IO-bound C function for which the python wrapper will release the GIL before the actual function call.

Do I have to write my own threading pool?

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up vote 232 down vote accepted

I just found out that there actually is a thread-based Pool interface in the multiprocessing module, however it is hidden somewhat and not properly documented.

It can be imported via

from multiprocessing.pool import ThreadPool

It is implemented using a dummy Process class wrapping a python thread. This thread-based Process class can be found in multiprocessing.dummy which is mentioned briefly in the docs. This dummy module supposedly provides the whole multiprocessing interface based on threads.

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That's awesome. I had a problem creating ThreadPools outside the main thread, you can use them from a child thread once created though. I put an issue in for it: – Olson Oct 2 '10 at 16:58
I don't get it why this class has no documentation. Such helper classes are so important nowadays. – Wernight Oct 15 '12 at 20:24
@Wernight: it isn't public primarily because nobody has offered a patch that provides it (or something similar) as threading.ThreadPool, including documentation and tests. It would indeed be a good battery to include in the standard library, but it won't happen if nobody writes it. One nice advantage of this existing implementation in multiprocessing, is that it should make any such threading patch much easier to write ( – ncoghlan Feb 6 '13 at 1:28
Noted as – ncoghlan Feb 6 '13 at 3:13
@ncoghlan — I am not sure what you mean by “include in the standard library” since ThreadPool is already part of the standard library, and it does not sound like @Wernight is asking for it to me moved from its current home to threading or anywhere else. I think he just wants it mentioned in the Standard Library documentation? – Brandon Rhodes Aug 6 '14 at 5:24

In Python 3 you can use concurrent.futures.ThreadPoolExecutor, i.e.:

executor = ThreadPoolExecutor(max_workers=10)
a = executor.submit(my_function)

See the docs for more info and examples.

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What does this add that the other answers have not? – Austin Henley Oct 10 '12 at 20:02
@AustinHenley a cleaner, more documented, more canonical API. – Avi Flax Nov 8 '12 at 17:52
It's also been backported to Python 2.5-2.7 – crusaderky Feb 11 '14 at 11:06
in order to use the backported futures module, run sudo pip install futures – yair Sep 10 '15 at 1:49

For something very simple and lightweight (slightly modified from here):

from Queue import Queue
from threading import Thread

    class Worker(Thread):
        """Thread executing tasks from a given tasks queue"""
        def __init__(self, tasks):
            self.tasks = tasks
            self.daemon = True

        def run(self):
            while True:
                func, args, kargs = self.tasks.get()
                    func(*args, **kargs)
                except Exception, e:
                    print e

    class ThreadPool:
        """Pool of threads consuming tasks from a queue"""
        def __init__(self, num_threads):
            self.tasks = Queue(num_threads)
            for _ in range(num_threads): Worker(self.tasks)

        def add_task(self, func, *args, **kargs):
            """Add a task to the queue"""
            self.tasks.put((func, args, kargs))

        def wait_completion(self):
            """Wait for completion of all the tasks in the queue"""

if __name__ == '__main__':
    from random import randrange
    from time import sleep

    delays = [randrange(1, 10) for i in range(100)]

    def wait_delay(d):
        print 'sleeping for (%d)sec' % d

    pool = ThreadPool(20)

    for i, d in enumerate(delays):
        pool.add_task(wait_delay, d)


To support callbacks on task completion you can just add the callback to the task tuple.

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Yes, and it seems to have (more or less) the same API.

import multiprocessing

def worker(lnk):
def start_process():

    pool = multiprocessing.Pool(processes=POOL_SIZE, initializer=start_process)
    pool = multiprocessing.pool.ThreadPool(processes=POOL_SIZE, initializer=start_process), inputs)
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Import path for ThreadPool is different from Pool. Correct import is from multiprocessing.pool import ThreadPool. – Marigold Dec 14 '15 at 22:31
Strangely this is not a documented API, and multiprocessing.pool is only briefly mentioned as providing AsyncResult. But it is available in 2.x and 3.x. – Marvin Jun 10 at 14:07

Here's something that looks promising over in the Python Cookbook:

Recipe 576519: Thread pool with same API as (multi)processing.Pool (Python)

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Nowadays it's built-in: from multiprocessing.pool import ThreadPool. – martineau Dec 10 '12 at 20:44

The overhead of creating the new processes is minimal, especially when it's just 4 of them. I doubt this is a performance hot spot of your application. Keep it simple, optimize where you have to and where profiling results point to.

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If the questioner is under Windows (which I do not believe he specified), then I think that process spinup can be a significant expense. At least it is on the projects that I have been recently doing. :-) – Brandon Rhodes Oct 24 '10 at 18:46

There is no built in thread based pool. However, it can be very quick to implement a producer/consumer queue with the Queue class.


from threading import Thread
from Queue import Queue
def worker():
    while True:
        item = q.get()

q = Queue()
for i in range(num_worker_threads):
     t = Thread(target=worker)
     t.daemon = True

for item in source():

q.join()       # block until all tasks are done
share|improve this answer
This is no longer the case with the concurrent.futures module. – Thanatos Feb 28 '14 at 23:58
I don't think this is true at all anymore. from multiprocessing.pool import ThreadPool – ranman Apr 14 at 2:30

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