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You could try extending the Queue class. Something like from queue import Queue class MyQueue(Queue): def __init__(self): #In py3, I believe you can just use super() #with no args super(MyQueue, self).__init__() self.completed_count = 0 def task_done(self): self.completed_count += 1 super(MyQueue, ...


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The Python Queue itself does not support this, so you could try the following from threading import Thread class QueueChecker(Thread): def __init__(self, q): Thread.__init__(self) self.q = q def run(self): q.join() q_manager_thread = QueueChecker(my_q) q_manager_thread.start() while q_manager_thread.is_alive(): #do ...


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You could just make your own class that inherits from PriorityQueue and does the messy -1 multiplication under the hood for you: class ReversePriorityQueue(PriorityQueue): def put(self, tup): newtup = tup[0] * -1, tup[1] PriorityQueue.put(self, newtup) def get(self): tup = PriorityQueue.get(self) newtup = tup[0] * -1, tup[1] return ...


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If you need to save the queue remaining content from the (one and only one) master thread after all consumer and producer threads have terminated, you just have to dump your queue to a plain of list -- and use pickle to persist that list. >>> def qdumper(q): ... try: ... yield q.get(False) ... except queue.Empty: ... pass ...


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This is an implementation limit with pipes or sockets well described in Issue 8426: multiprocessing.Queue fails to get() very large objects. Note it also applies to a lot of small objects. Solution Either make sure to consume the result queue concurrently fast enough from child processes, call Queue.cancel_join_thread() Documentation Bear in mind ...


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Apparently, having more than 6570 items in a queue might cause a deadlock (more information in this thread). What you can do is empty result_queue at the end of the main execution: while not result_queue.empty(): result_queue.get(False) result_queue.task_done() print "Done" Note that you don't have to call exit in the worker function, return is ...


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Don't use a global for the queue object. It is not being shared among the processes. Use multiprocessing.Queue instead and pass it in as an argument so it'll be managed: def mp_factorizer(nums): out_q = multiprocessing.Queue() def worker(num, out_q): outdict = {} outdict[num] = num * 2 print outdict ...



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