SOLVED: The problem was Wingware Python IDE. I guess the natural question now is how it is possible and how this could be fixed.
I asked a question yesterday ( Problem with multiprocessing.Pool in Python ) and this question is almost the same but I have figured out that it seems to work on a Windows computer and not in my ubuntu. At the end of this post I will post a slightly different version of the code that does the same thing.
Short summary of my problem: When using multiprocessing.Pool in Python I am not always able to get the amount of workers that I am asking for. When this happens, the program just stalls.
I have been working for a solution all day, and then I came to think about Noahs' comment on my previous question. He said that it worked on his machine so I gave the code to my colleague who runs a Windows machine with Enthoughts 64-bit Python 2.7.1 distribution. I have the same with the big difference that mine runs on ubuntu. I also mention that we both have Wingware Python IDE, but I doubt that this is of any importance?
There are two problems with my code that don't arise when my colleague runs the code on his machine.
I am not always able to get the four workers I am asking for (Although my machine has 12 workers). When this happens, the process just stalls and does not continue. No exception or Error is raised.
When I am able to get the four workers I ask for (which happens approximately 1 out 5 times or so), the figures that are produced (plain random numbers) are EXACTLY the same for all four pictures. This is not the case for my colleague.
Something is very fishy and I am very thankful for any kind of help you guys can offer.
import multiprocessing as mp import scipy as sp import scipy.stats as spstat import pylab def testfunc(x0, N): print 'working with x0 = %s' % x0 x = [x0] for i in xrange(1,N): x.append(spstat.norm.rvs(size = 1)) # stupid appending to make it slower if i % 10000 == 0: print 'x0 = %s, i = %s' % (x0, i) return sp.array(x) def testfuncParallel(fargs): return testfunc(*fargs) # Define Number of tasks. nTasks = 4 N = 100000 if __name__ == '__main__': """ Try number 1. Using multiprocessing.Pool together with Pool.map_async """ pool = mp.Pool(processes = nTasks) # I have 12 threads (six cores) available so I am suprised that it does not get access to nTasks = 4 amount of workers # Define tasks: tasks = [(x, n) for x, n in enumerate(nTasks*[N])] # nTasks different tasks # Compute parallel: async - asynchronically, i.e. not necessary in order. result = pool.map_async(testfuncParallel, tasks) pool.close() # These are needed if map_async is used pool.join() # Get results: sim = sp.zeros((N, nTasks)) for nn, res in enumerate(result.get()): sim[:, nn] = res pylab.figure() for i in xrange(nTasks): pylab.subplot(nTasks,1, i + 1) pylab.plot(sim[:, i]) pylab.show()
Thanks in advance.