I wrote a multiprocessing program in python. It can illustrate as follow:

nodes = multiprocessing.Manager().list()

lock = multiprocess.Lock()
def get_elems(node):
    #get elements by send requests
def worker():
    node = nodes.pop(0)
    elems = get_elems(node)

        for elem in elems:
if __name__ == "__main__":
    node = {"name":"name", "group":0}
    processes = [None for i in xrange(10)]
    for i in xrange(10):
        processes[i] = multiprocessing.Process(target=worker)
    for i in xrange(10):

At the beginning of the program run, it seems everything is okay. After run for a while. the speed of the program slow down. The phenomenon also exist when use multithreading. And I saw there is a Global Interpreter Lock in Python, So I change to multiprocessing. But still have this phenomenon. The complete code is in here. I have tried Cython, still have this phenomenon. Is there something wrong in my code? Or is there a birth defects in python about parallel?

  • To my mind, too many lock operations will definitely slow your code down. Using global variables is not really good too. – ForceBru Apr 18 '15 at 15:11
  • What operating system? – Mark Tolonen Apr 18 '15 at 15:22
  • Multiprocessing doesn't provide satisfactory results if inter-process communication overhead between the processors is high. Loops are the places where most of the computation time is spent. Try to optimize those areas. Also, why don't you try pipe-lining? – V Sree Harissh Apr 18 '15 at 15:34
  • excuse my ignorance, but is nodes.extend(node) working at all? Doesn't it require an iterable? Maybe you need nodes.append(node), if I understand your code correctly (i.e. you are trying to add an element to the list as it is, not adding its subelements as new list elements) – Pynchia Apr 18 '15 at 16:21
  • or maybe, you might want to correct nodes.extend(node) with nodes.extend(elems) ? I am bettin gon this an posting it as an answer... – Pynchia Apr 18 '15 at 16:31

I'm not sure it's the actual cause but, you are popping from the beginning of an increasingly longer list. That's expensive. Try to use a collections.deque.

Update: Read the linked code. You should use a Queue, as suggested in the comments to this post, and threads. You do away with locks using the Queue. The workers are IO bound so threads are appropriate.

  • 1
    Instead of collections.deque, try multiprocessing.Queue, which is multiprocess safe, so you don't need most of the locks anymore. – Lie Ryan Apr 18 '15 at 15:35
  • 1
    For a FIFO, it's undeniably better. I don't know why he's using a list... Also, a deque would also only work with threads and not as IPC and the Manager doesn't have a deque. – Javier Apr 18 '15 at 15:39
  • 1
    @Javier You can create a custom Manager that exposes a deque, if the problem really calls for one. See this answer – dano Apr 18 '15 at 15:47
  • Ah, by using a proxy! Good catch! Thanks @dano! – Javier Apr 18 '15 at 16:35
  • @Javier You mean i should use multithreading with Queue? – stamaimer Apr 19 '15 at 4:22

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