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  • Why is the CPU usage of my threaded python merge sort only 50% for each core?
  • Why does this result in "cannot create new thread" errors for relatively small inputs (100000)
  • How can I make this more pythonic? (It's very ugly.)
  • Linux/Ubuntu 12.4 64-bit i5 mobile (quad)

    from random import shuffle
    from threading import *
    import time
    import Queue
    q = Queue.LifoQueue()
    def merge_sort(num, q):
      end = len(num)
      if end > 1:
        mid = end / 2
        thread = Thread(target=merge_sort, args=(num[0:mid],q,))
        thread1 = Thread(target=merge_sort, args=(num[mid:end],q,))
        return merge(q.get(num), q.get(num))
        if end != 0:
         print "?????"
    def merge(num, num1):
      a = []
      while len(num) is not 0 and len(num1) is not 0:
        if num[0] < num1[0]:
      if len(num) is not 0:
        for i in range(0,len(num)):
      if len(num1) is not 0:
        for i in range(0,len(num1)):
      return a
    def main():
        val = long(raw_input("Please enter the maximum value of the range:")) + 1
        start_time = time.time()
        numbers = xrange(0, val)
        numbers = merge_sort(numbers[0:val], q)
    #    print "Sorted list is: \n"
    #    for number in numbers:
    #      print number
        print str(time.time() - start_time) + " seconds to run.\n"
    if __name__ == "__main__":
    share|improve this question

    2 Answers 2

    For the 100000 input your code tries to create ~200000 threads. Python threads are real OS threads so the 50% CPU load that you are seeing is probably the system busy handling the threads. On my system the error happens around ~32000 threads.

    Your code as written can't possibly work:

    from random import shuffle
    #XXX won't work    
    numbers = xrange(0, val)

    xrange() is not a mutable sequence.

    Note: the sorting takes much less time than the random shuffling of the array:

    import numpy as np
    numbers = np.random.permutation(10000000) # here spent most of the time

    If you want to sort parts of the array using different threads; you can do it:

    from multiprocessing.dummy import Pool # use threads 
    Pool(2).map(lambda a: a.sort(), [numbers[:N//2], numbers[N//2:]])

    a.sort() releases GIL so the code uses 2 CPUs.

    If you include the time it takes to merge the sorted parts; it may be faster just to sort the whole array at once (numbers.sort()) in a single thread.

    share|improve this answer

    You may want to look into using Parallel Python, as by default CPython will be restricted to one core because of the Global Interpreter Lock (GIL). This is why CPython cannot perform true CPU bound concurrent operations. But, CPython is still great at carrying out IO bound tasks.

    There is a good article that describes the threading limitations of CPyton here.

    share|improve this answer
    I'll rephrase it @J.F.Sebastian. –  eandersson May 4 '13 at 23:50
    I'd say it as: CPU-bound multithreaded pure Python code doesn't take advantage of multiple CPU cores (without using C extensions such as numpy that can release GIL or the multiprocessing module that uses multiple processes). Minor nitpick: concurrent and parallel is not the same in programming i.e., it is not necessary for concurrent operations to be executed in parallel (think about OSes that allowed multiple concurrent processes on a single CPU in the past). –  J.F. Sebastian May 5 '13 at 0:05

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