I have a strong background in numeric compuation using FORTRAN and parallelization with OpenMP, which I found easy enough to use it on many problems. I switched to PYTHON since it much more fun (at least for me) to develop with, but parallelization for nummeric tasks seem much more tedious than with OpenMP. I'm often interested in loading large (tens of GB) data sets to to the main Memory and manipulate it in parallel while containing only a single copy of the data in main memory (shared data). I started to use the PYTHON module MULTIPROCESSING for this and came up with this generic example:

```
#test cases
#python parallel_python_example.py 1000 1000
#python parallel_python_example.py 10000 50
import sys
import numpy as np
import time
import multiprocessing
import operator
n_dim = int(sys.argv[1])
n_vec = int(sys.argv[2])
#class which contains large dataset and computationally heavy routine
class compute:
def __init__(self,n_dim,n_vec):
self.large_matrix=np.random.rand(n_dim,n_dim)#define large random matrix
self.many_vectors=np.random.rand(n_vec,n_dim)#define many random vectors which are organized in a matrix
def dot(self,a,b):#dont use numpy to run on single core only!!
return sum(p*q for p,q in zip(a,b))
def __call__(self,ii):# use __call__ as computation such that it can be handled by multiprocessing (pickle)
vector = self.dot(self.large_matrix,self.many_vectors[ii,:])#compute product of one of the vectors and the matrix
return self.dot(vector,vector)# return "length" of the result vector
#initialize data
comp = compute(n_dim,n_vec)
#single core
tt=time.time()
result = [comp(ii) for ii in range(n_vec)]
time_single = time.time()-tt
print "Time:",time_single
#multi core
for prc in [1,2,4,10]:#the 20 case is there to check that the large_matrix is only once in the main memory
tt=time.time()
pool = multiprocessing.Pool(processes=prc)
result = pool.map(comp,range(n_vec))
pool.terminate()
time_multi = time.time()-tt
print "Time using %2i processes. Time: %10.5f, Speedup:%10.5f" % (prc,time_multi,time_single/time_multi)
```

I ran two test cases on my machine (64bit Linux using Fedora 18) with the following results:

```
andre@lot:python>python parallel_python_example.py 10000 50
Time: 10.3667809963
Time using 1 processes. Time: 15.75869, Speedup: 0.65785
Time using 2 processes. Time: 11.62338, Speedup: 0.89189
Time using 4 processes. Time: 15.13109, Speedup: 0.68513
Time using 10 processes. Time: 31.31193, Speedup: 0.33108
andre@lot:python>python parallel_python_example.py 1000 1000
Time: 4.9363951683
Time using 1 processes. Time: 5.14456, Speedup: 0.95954
Time using 2 processes. Time: 2.81755, Speedup: 1.75201
Time using 4 processes. Time: 1.64475, Speedup: 3.00131
Time using 10 processes. Time: 1.60147, Speedup: 3.08242
```

My question is, am I misusing the MULTIPROCESSING module here? Or is this the way it goes with PYTHON (i.e. don't parallelize within python but rely totally on numpy's optimizations)?

`threading`

module? Then, no, CPU-bound applications won't gain from Python threading as of the GIL. Native threading, however, is awesome, but this must be supported by the underlying library. – Jan-Philip Gehrcke Jul 24 '13 at 9:51may release GILi.e., CPU-bound applications can gain performance even using`threading`

module. – J.F. Sebastian Jul 24 '13 at 10:10