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I'm having this problem in python:

  • I have a queue of URLs that I need to check from time to time
  • if the queue is filled up, I need to process each item in the queue
  • Each item in the queue must be processed by a single process (multiprocessing)

So far I managed to achieve this "manually" like this:

while 1:

        while not self.mainUrlQueue.empty():
            domain = self.mainUrlQueue.get()

            # if we didn't launched any process yet, we need to do so
            if len(self.jobs) < maxprocess:
                # If we already have process started we need to clear the old process in our pool and start new ones
                jobdone = 0

                # We circle through each of the process, until we find one free ; only then leave the loop 
                while jobdone == 0:
                    for p in self.jobs :
                        #print "entering loop"
                        # if the process finished
                        if not p.is_alive() and jobdone == 0:
                            #print str(p.pid) + " job dead, starting new one"
                            jobdone = 1

However that leads to tons of problems and errors. I wondered if I was not better suited using a Pool of process. What would be the right way to do this?

However, a lot of times my queue is empty, and it can be filled by 300 items in a second, so I'm not too sure how to do things here.

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1 Answer 1

You could use the blocking capabilities of queue to spawn multiple process at startup (using multiprocessing.Pool) and letting them sleep until some data are available on the queue to process. If your not familiar with that, you could try to "play" with that simple program:

import multiprocessing
import os
import time

the_queue = multiprocessing.Queue()

def worker_main():
    print os.getpid(),"working"
    while True:
        item = the_queue.get(True)
        print os.getpid(), "got", item
        time.sleep(1) # simulate a "long" operation

the_pool = multiprocessing.Pool(3, worker_main,())

for i in range(5):


This will spawn 3 processes (in addition of the parent process). Each child run on startup the worker_main function which is a loop to get the next item to process. Blocking if nothing is available to process. At startup all the 3 process will sleep until the queue is fed with some data. When a data is available one of the worker waiting take the item and start to process it. After that, it goes back to the queue, waiting again for something to do...

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this doesn't work on windows in python 2.7.4, you need to have the if name = 'main' part and you should pass the the_queue as a third parameter into the multiprocessing.Pool function,otherwise the worker_main doesn't receive the data –  jhexp Jun 30 at 12:06

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