Sign up ×
Stack Overflow is a community of 4.7 million programmers, just like you, helping each other. Join them; it only takes a minute:

I am curious to know if it is possible to run a python script that calls a function as parallel child processes. I'm not sure I'm using these terms correctly so here's a concept script fashioned from a bash script that does what I'm talking about.

import Zfunctions as Z

def Parallel():
    calls to other functions in a general function file Z

if '__name__' == '__main__':
    # Running this script in a linux cluster with 8 processing node available
    Parallel() &  #1st process sent to 1st processing node
    Parallell() & #2nd process sent to 2nd node
    Parallell() & #8th process sent to 8th node

Now I know the ampersand (&) and "wait" are wrong here but in the bash it is the way to sent the process to the background and wait for these processes to finish. My question is now, hopefully clearer: Can this be done in python, and if so how?

Any help is appreciated.


I have gotten some good help. I tested this modification my question above which tries to run 60 jobs that will process a huge amount of data and write the results to disk. All this is in a single python file that combines two for loops and a series of internal functions calls. The script fails and the error output is found below:

import multiprocessing

def Parallel(m,w,PROCESSES):                                                             
plist = {}                                                                           
plist['timespan'] = '2007-2008'                                                      
print 'Creating pool with %d processes\n' % PROCESSES                                
pool = multiprocessing.Pool(PROCESSES)                                               
print 'pool = %s' % pool                                                             

TASKS = [(LRCE,(plist,m,w)),(SRCE,(plist,m,w)),(ALBEDO,(plist,m,w)),                 

results = [pool.apply_async(calculate,t) for t in TASKS]                             
print 'Ordered results using pool.apply_async():'                                    
for r in results:                                                                    
    print '\t', r.get()                                                              

if __name__ == '__main__':                                                               
PROCESSES = 8                                                                        
for w in np.arange(2):                                                               
    for m in np.arange(2):                                                           
#### error message from cluster

Exception in thread Thread-3: Traceback (most recent call last): File "/software/apps/python/2.7.2-smhi1/lib/python2.7/", line 552, in bootstrap_inner File "/software/apps/python/2.7.2-smhi1/lib/python2.7/", line 505, in run self.__target(*self.__args, **self.__kwargs) File "/software/apps/python/2.7.2-smhi1/lib/python2.7/multiprocessing/", line 313, in _handle_tasks put(task) PicklingError: Can't pickle : attribute lookup __builtin.function failed

share|improve this question

1 Answer 1

up vote 2 down vote accepted

You probably want to look into multiprocessing -- your code could be accomplished as follows:

import multiprocessing

def Parallel(junk):    

if __name__ == "__main__":
   p = multiprocessing.Pool(8)

   results =, range(8))

One warning: Don't try this in an interactive interpreter.

share|improve this answer
The code would not return any data. Would it work with just:,range(8))? How does "results" look like if each parallel call is independent of each other? – Shejo284 Jul 25 '12 at 12:21
@Shejo284 -- python functions always return something. Even without an explicit return statement, they return None. So, in this case, you'd get a list of 8 None values. You can choose not to store it though:,range(8)) instead of results =, range(8)). – mgilson Jul 25 '12 at 12:24
Great solution, thanks! Two final questions, if I may. If I wanted to run a set of different functions in addition to Parallel: results =[Parallel,f2,f3,...f8], range(8)) Would this work? What about waiting until each process is complete before the call: results =, range(8)) could be repeated? – Shejo284 Jul 25 '12 at 12:35
@Shejo284 -- I'm confused. Do you want each process to run f1,f2,f3 ... in order before returning? If that's the case, just wrap them up in another function. (with you can only call 1 function). If you want f1 to run 8 times, wait, then run f2 8 times, you can just again to run f2. Does that answer your question? Note that will wait until all the processes have completed no matter what. If you don't want to wait, Pool.apply_async could be what you want which will behave more similarly to the & in bash. Take a look at the documentation in the link. – mgilson Jul 25 '12 at 12:44
@ mgilson -- My question has evolved somewhat (see edited edition above). I think the Pool.apply_async is what I need but testing is not possible, as you pointed out in interactive mode. Submitting this to my cluster will take hours to run. Would love more help with the partial solution above. I think I need a condition, according to the documentation but I'm not sure how to implement it. – Shejo284 Jul 25 '12 at 15:27

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.