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We had a web services server running in python 3.2 (Fedora Core 14 64b) but were forced to back-port to python 2.6.7 because of a new dependency (which did not have 3.2 support). There is a section of the code that was using concurrent futures that has been rewritten to use the multiprocessing.Pool to perform a couple critical sections in parallel. The code now looks like this:

import multiprocessing
def _run_threads(callable_obj, args, threads):
    pool = multiprocessing.Pool(processes=threads)
    process_list = [pool.apply_async(callable_obj, a) for a in args]
    return [x.get() for x in process_list]

Apologies for the confusing abuse of the name "threads." These are processes.

Since implementing this function, we find that it sometimes hangs. We get a garbled traceback when we eventually kill the parent (master) process; but there are couple lines that seem critical:

Process PoolWorker-445:
File "/usr/lib64/python2.6/multiprocessing/pool.py", line 59, in worker
task = get()
File "/usr/lib64/python2.6/multiprocessing/queues.py", line 352, in get
return recv()

It seems to me from the available evidence, that a child process in the pool is failing to receive the "close" signal from the parent process, so it sits waiting for work. The parent sits waiting for the child to shut down. The server hangs. This happens nondeterministically but too frequent for such a critical server (once a day).

Is there a problem in the coding of the run_threads() function? Is this a known problem with a known work-around? Obviously, we are using this for time-critical processing, so we prefer not to recode for sequential execution unless absolutely necessary. And one of the reasons for sticking to multiprocessing.Pool is the easy access to return codes for the operations run in parallel.


share|improve this question
Im curious why don't you use pool.map? – Samy Vilar Sep 18 '12 at 21:44
RE: pool.map - I had a strange problem unfolding the arguments out of the list correctly for pool.map(). At the time, I just coded around the problem to keep from having to restructure how other parts of the code dealt with the args list. – Mayur Patel Sep 19 '12 at 15:29
I had a strange problem now that sounds more interesting, pool.map is the easiest and in my opinion the safest way to utilize multi-core system in python, fundamentally I don't know how or if pool.apply_async is properly scheduling the multiple sub process, pool.map does this quite efficiently... try using it and let me know what error you get, apply_sync is more suited with callbacks ... – Samy Vilar Sep 19 '12 at 20:55
up vote 0 down vote accepted

I am not sure where this issue has its origin. It's definitely very interesting. However, maybe a little restructuring solves the problem. I think you do not require to terminate the pool processes before having collected your results, right? Maybe sticking to the 'canonical' way of using a Pool, as documented, helps:

result = pool.apply_async(time.sleep, (10,))
print result.get(timeout=1)           # raises TimeoutError

Or, in your case, call x.get() for x in process_list before closing/joining the pool. If the problem persists and occurs during get(), we at least know it has nothing to do with close().

share|improve this answer
Yes, thanks. My immediate reaction was to recode as you describe, but also add a pool.terminate() call just to make sure nobody gets caught waiting for too long after the return values are collected. Still, I would love to have more insight as to why this happens. If I were using the async object incorrectly, one would think it would fail much more frequently. – Mayur Patel Sep 19 '12 at 15:31
Did the errors disappear after recoding? – Jan-Philip Gehrcke Sep 19 '12 at 19:21
After a few days of testing, we have not seen the error again. I'm marking the question answered - though really no new information was shed on the problem. – Mayur Patel Sep 20 '12 at 20:55

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