The following code doesn't appear to work properly for me. It requires starting a ppserver on another computer on your network, for example with the following command:
ppserver.py -r -a -w 4
Once this server is started, on my machine I run this code:
import pp import time job_server = pp.Server(ppservers = ("*",)) job_server.set_ncpus(0) def addOneBillion(x): r = x for i in xrange(10**9): r+=1 f = open('/home/tomb/statusfile.txt', 'a') f.write('finished at '+time.asctime()+' for job with input '+str(x)+'\n') return r jobs =  jobs.append(job_server.submit(addOneBillion, (1,), (), ("time",))) jobs.append(job_server.submit(addOneBillion, (2,), (), ("time",))) jobs.append(job_server.submit(addOneBillion, (3,), (), ("time",))) for job in jobs: print job() print 'done'
The odd part:
Watching the /home/tomb/statusfile.txt, I can see that it's getting written to several times, as though the function is being run several times. I've observed this continuing for over an hour before, and never seen a
Odder: If I change the number of iterations in the testfunc definition to 10**8, the function is just run once, and returns a result as expected!
Seems like some kind of race condition? Just using local cores works fine. This is with pp v 1.6.0 and 1.5.7.
Update: Around 775,000,000: I get inconsistent results: two jobs repeat once, on finishes the first time.
Week later update: I've written my own parallel processing module to get around this, and will avoid parallel python in the future, unless someone figures this out - I'll get around to looking at it some more (actually diving into the source code) at some point.
Months later update: No remaining hard feelings, Parallel Python. I plan to move back as soon as I have time to migrate my application. Title edit to reflect solution.