I had some perfectly working python code which used multiprocessing module and loaded all 8 CPUs on my machine at 100%.
After I upgraded from Ubuntu 10.10 to 12.04 (the most evident thing, maybe I did something else that broke everything), it stopped working. After lots of debugging, I found that even in the simplest use case, both modules are only using 1 CPU:
from pylab import * import multiprocessing as mp from joblib import Parallel, delayed def f(i): # Slow calculation x = 1 for j in range(100000): x = cos(x) print i, x if __name__ == '__main__': # Try to multiprocess with multiprocessing mp.Pool(processes=8).map(f, range(100)) # Try to multiprocess with joblib Parallel(n_jobs=8)(delayed(f)(i) for i in range(100))
I need to use all 8 CPUs in my system. Any ideas of what I should look at to fix the issue?
As ali_m pointed out in a comment here and in the answer to
Why does multiprocessing use only a single core after I import numpy? the problem is related to
numpy messing up with cpu affinity. Calling
os.system('taskset -p 0xffffffff %d' % os.getpid())
Before I do any multiprocessing solved the problem for me.