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I'm trying to figure out multi-threading programming in python. Here's the simple task with which I want to compare serial and parallel speeds.

import threading
import Queue
import time
import math

def sinFunc(offset, n):
  result = []
  for i in range(n):
    result.append(math.sin(offset + i * i))
  return result

def timeSerial(k, n):
  t1 = time.time()    
  answers = []
  for i in range(k):
    answers.append(sinFunc(i, n))
  t2 = time.time()
  print "Serial time elapsed: %f" % (t2-t1)

class Worker(threading.Thread):

  def __init__(self, queue, name):
    self.__queue = queue
    threading.Thread.__init__(self) = name

  def process(self, item):
    offset, n = item
    self.__queue.put(sinFunc(offset, n))

  def run(self):
    while 1:
        item = self.__queue.get()
        if item is None:

def timeParallel(k, n, numThreads):
  t1 = time.time()    
  queue = Queue.Queue(0)
  for i in range(k):
    queue.put((i, n))
  for i in range(numThreads):
  for i in range(numThreads):
    Worker(queue, i).start()
  t2 = time.time()
  print "Serial time elapsed: %f" % (t2-t1)

if __name__ == '__main__':

  n = 100000
  k = 100
  numThreads = 10

  timeSerial(k, n)
  timeParallel(k, n, numThreads)

#Serial time elapsed: 2.350883
#Serial time elapsed: 2.843030

Can someone explain to me what's going on? I'm used to C++, and a similar version of this using the module sees the speed-up we would expect.

share|improve this question
Threads are not magic devices that you add to the app and it will get faster. Mind the cost of making a thread is not negligible e.g. usually 1MB of Virtual Address Space is used just at the creation. – lukas May 28 '12 at 18:45
Perhaps, but that isn't the issue here. The OP is running headfirst into the GIL, a problem typically solved by using either the multiprocessing module or by using Stackless Python instead of the default CPython interpreter. – Chinmay Kanchi May 28 '12 at 23:10

3 Answers 3

up vote 7 down vote accepted

Other answers have referred to the issue of the GIL being the problem in cpython. But I felt there was a bit of missing information. This will cause you performance issues in situations where the code you are running in threads is CPU bound. In your case here, yes doing many calculations in threads is going to most likely result in dramatically degraded performance.

But, if you were doing something that was more IO bound, such as reading from many sockets in a network application, or calling out to subprocess, you can get performance increases from threads. A simple example for your code above would be to add a stupidly simple call out to the shell:

import os

def sinFunc(offset, n):
  result = []
  for i in xrange(n):
    result.append(math.sin(offset + i * i))
  os.system("echo 'could be a database query' >> /dev/null; sleep .1")
  return result

That call might have been something real like waiting on the filesystem. But you can see that in this example, threading will start to prove beneficial, as the GIL can be released when the thread is waiting on IO and other threads will continue to process. Even so, there is still a sweet spot for when more threads start to become negated by the overhead of creating them and synchronizing them.

For CPU bound code, you would make use of multiprocessing

From article:

...threading is more appropriate for I/O-bound applications (I/O releases the GIL, allowing for more concurrency)...

Similar question references about threads vs processes:

share|improve this answer
+1 for the distinction between CPU and IO bound threads and for referencing multiprocessing. – Chinmay Kanchi May 28 '12 at 23:00
Oh, and a link to stackless ( might be useful! – Chinmay Kanchi May 28 '12 at 23:01

Python has a severe threading problem. Basically, adding threads to a Python application almost always fails to make it faster, and sometimes makes it slower.

This is due to the Global Interpreter Lock, or GIL.

Here's blog post about it that includes a talk on the subject.

One way to bypass this limitation is to use processes instead of threads; this is made easier by the multiprocessing module.

share|improve this answer
Do you think its really correct to say "almost always fails to make it faster"? Isn't it completely dependent on whether the application is IO or cpu bound? I feel a blanket statement is misleading. – jdi May 28 '12 at 18:49
I understand the GIL issue. I'm saying that if the work being done in the threads is IO bound, then it will suit a threaded approach because the GIL can release often. And I was referring to it being a blanket python threading statement. – jdi May 28 '12 at 19:00
Yes there are problems. However, does that mean threads will "almost always" hurt, even judicious use of I/O-bound threads? – delnan May 28 '12 at 19:09
@cha0site It's not Python specific, it's CPython specific. – kosii May 28 '12 at 21:42
"adding threads to a Python application almost always fails to make it faster, and sometimes makes it slower" as a general statement to the question is extremely misleading or even wrong. Threading is useful for introducing concurrency. Without concurrency, many applications can't be designed in a usable way. Hence, threading makes applications work at all. In most cases, it's not about making the application faster. – Jan-Philip Gehrcke May 29 '12 at 17:27

Python libraries that are written in C can obtain/release the Global Interpreter Lock (GIL) at will. Those that do not use Python objects can release the GIL so that other threads can get a look-in, however I believe that the math library uses Python Objects all the time, so effectively math.sin is serialised. Since locking/unlocking is an overhead, it is not unusual for Python threads to be slower than processes.

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