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Question: Because of python's use of "GIL" is python capable running its separate threads simultaneously?


After reading this I came away rather uncertain on whether or not python is capable of taking advantage of a multi-core processor. As well done as python is, it feels really weird to think that it would lack such a powerful ability. So feeling uncertain, I decided to ask here. If I write a program that is multi threaded, will it be capable of executing simultaneously on multiple cores?

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Related:… – birryree Sep 25 '11 at 1:03
up vote 21 down vote accepted

The answer is "Yes, But..."

But cPython cannot when you are using regular threads for concurrency.

You can either use something like multiprocessing, celery or mpi4py to split the parallel work into another process;

Or you can use something like Jython or IronPython to use an alternative interpreter that doesn't have a GIL.

A softer solution is to use libraries that don't run afoul of the GIL for heavy CPU tasks, for instance numpy can do the heavy lifting while not retaining the GIL, so other python threads can proceed. You can also use the ctypes library in this way.

If you are not doing CPU bound work, you can ignore the GIL issue entirely (kind of) since python won't aquire the GIL while it's waiting for IO.

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Or Stackless Python, I believe. – agf Sep 25 '11 at 1:18
I believe pypy still has the GIL for now, they are experimenting with Software transitional memory but its not done yet. – Jakob Bowyer Sep 25 '11 at 2:26
It seems you're right; although some of the work that would be needed to support a GILless PyPy has been started (in particular, the hybrid garbage collector), the GIL is still present; I've edited the answer to reflect that. – SingleNegationElimination Sep 25 '11 at 2:37
consider how almost everyone responded to how my question as if I didn't know what GIL was, I get the feeling that you are the only one to read the entire question... anyway, thanks, all the links to various libraries is quite helpful. – Narcolapser Sep 25 '11 at 5:11

Python threads cannot take advantage of many cores. This is due to an internal implementation detail called the GIL (global interpreter lock) in the C implementation of python (cPython) which is almost certainly what you use.

The workaround is the multiprocessing module which was developed for this purpose.


(Or use a parallel language.)

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+1 for saying that threads are somehow limited, what I experienced so far.. with multiprocessing it works! – math Nov 13 '13 at 15:18

CPython (the classic and prevalent implementation of Python) can't have more than one thread executing Python bytecode at the same time. This means compute-bound programs will only use one core. I/O operations and computing happening inside C extensions (such as numpy) can operate simultaneously.

Other implementation of Python (such as Jython or PyPy) may behave differently, I'm less clear on their details.

The usual recommendation is to use many processes rather than many threads.

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Threads share a process and a process runs on a core, but you can use python's multiprocessing module to call your functions in separate processes and use other cores, or you can use the subprocess module, which can run your code and non-python code too.

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example code taking all 4 cores on my ubuntu 14.04, python 2.7 64 bit.

import time
import threading

def t():
    with open('/dev/urandom') as f:
        for x in xrange(100):
   * 65535)

if __name__ == '__main__':
    start_time = time.time()
    print "Sequential run time: %.2f seconds" % (time.time() - start_time)

    start_time = time.time()
    t1 = threading.Thread(target=t)
    t2 = threading.Thread(target=t)
    t3 = threading.Thread(target=t)
    t4 = threading.Thread(target=t)
    print "Parallel run time: %.2f seconds" % (time.time() - start_time)


$ python
Sequential run time: 3.69 seconds
Parallel run time: 4.82 seconds
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