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I'm working on a fairly large project in Python that requires one of the compute-intensive background tasks to be offloaded to another core, so that the main service isn't slowed down. I've come across some apparently strange behaviour when using multiprocessing.Queue to communicate results from the worker process. Using the same queue for both a threading.Thread and a multiprocessing.Process for comparison purposes, the thread works just fine but the process fails to join after putting a large item in the queue. Observe:

import threading
import multiprocessing

class WorkerThread(threading.Thread):
    def __init__(self, queue, size):
        self.queue = queue
        self.size = size

    def run(self):

class WorkerProcess(multiprocessing.Process):
    def __init__(self, queue, size):
        self.queue = queue
        self.size = size

    def run(self):

if __name__ == "__main__":
    size = 100000
    queue = multiprocessing.Queue()

    worker_t = WorkerThread(queue, size)
    worker_p = WorkerProcess(queue, size)

    print 'thread results length:', len(queue.get())

    print 'process results length:', len(queue.get())

I've seen that this works fine for size = 10000, but hangs at worker_p.join() for size = 100000. Is there some inherent size limit to what multiprocessing.Process instances can put in a multiprocessing.Queue? Or am I making some obvious, fundamental mistake here?

For reference, I am using Python 2.6.5 on Ubuntu 10.04.

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2 Answers 2

up vote 8 down vote accepted

Seems the underlying pipe is full, so the feeder thread blocks on the write to the pipe (actually when trying to acquire the lock protecting the pipe from concurrent access).

Check this issue http://bugs.python.org/issue8237

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Thanks, that's exactly the issue I'm experiencing, and dequeuing in the parent thread before joining seems to work fine. –  Brendan Wood Apr 5 '12 at 15:42

The answer to python multiprocessing: some functions do not return when they are complete (queue material too big) implements what you probably mean by "dequeuing" before joining" in a parallel execution of an arbitrary set of functions, whose return values get queued.

This therefore allows any size of stuff to get put into the queues, so that the limit you found does not get in the way.

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