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I have very simple cases where the work to be done can be broken up and distributed between workers. I tired a very simple multiprocessing example from here:

import multiprocessing
import numpy as np
import time

def do_calculation(data):
    print data, rand
    return data * 2

if __name__ == '__main__':
    pool_size = multiprocessing.cpu_count() * 2
    pool = multiprocessing.Pool(processes=pool_size)

    inputs = list(range(10))
    print 'Input   :', inputs

    pool_outputs = pool.map(do_calculation, inputs)
    print 'Pool    :', pool_outputs

The above program produces the following output :

Input   : [0, 1, 2, 3, 4, 5, 6, 7, 8, 9]
0 7
1 7
2 7
5 7
3 7
4 7
6 7
7 7
8 6
9 6
Pool    : [0, 2, 4, 6, 8, 10, 12, 14, 16, 18]

Why is the same random number getting printed? (I have 4 cpus in my machine). Is this the best/simplest way to go ahead?

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1 Answer 1

up vote 4 down vote accepted

I think you'll need to re-seed the random number generator using numpy.random.seed in your do_calculation function.

My guess is that the random number generator (RNG) gets seeded when you import the module. Then, when you use multiprocessing, you fork the current process with the RNG already seeded -- Thus, all your processes are sharing the same seed value for the RNG and so they'll generate the same sequences of numbers.


def do_calculation(data):
    print data, rand
    return data * 2
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Can you show me how to put seed in do_calculation. If I put seed in main I still get similar output. –  imsc Oct 16 '12 at 13:06
@imsc -- Sorry, I didn't read carefully enough. You want np.random.seed (not random.seed). I've updated accordingly. –  mgilson Oct 16 '12 at 13:10
I still get similar result. –  imsc Oct 16 '12 at 13:12
@imsc - Are you sure? I can reproduce your original behavior on my laptop (only 2 cores), but it gets better when I add np.random.seed(). Another thing that might be making this a little more cloudy is the pool_size = multiprocessing.cpu_count() * 2. Perhaps try just using cpu_count(). You don't really gain much using more than that anyway I wouldn't think... –  mgilson Oct 16 '12 at 13:15
Thanks a lot. Previously I put the seed after calculating the random number. –  imsc Oct 16 '12 at 13:59

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