34

I encountered a weird problem while using python multiprocessing library.

My code is sketched below: I spawn a process for each "symbol, date" tuple. I combine the results afterwards.

I expect that when a process has done computing for a "symbol, date" tuple, it should release its memory? apparently that's not the case. I see dozens of processes (though I set the process pool to have size 7) that are suspended¹ in the machine. They consume no CPU, and they don't release the memory.

How do I let a process release its memory, after it has done its computation?

Thanks!

¹ by "suspended" I mean their status in ps command is shown as "S+"

def do_one_symbol( symbol, all_date_strings ):
    pool = Pool(processes=7)
    results = [];
    for date in all_date_strings:
        res = pool.apply_async(work, [symbol, date])
        results.append(res);

    gg = mm = ss = 0;
    for res in results:
        g, m, s = res.get()
        gg += g; 
        mm += m; 
        ss += s;

3 Answers 3

33

Did you try to close pool by using pool.close and then wait for process to finish by pool.join, because if parent process keeps on running and does not wait for child processes they will become zombies

1
  • 1
    This was the root cause of my script caused node reboot due to >90% of 4Gb memory were consumed :) Thank You! May 8, 2017 at 15:01
23

Try setting the maxtasksperchild argument on the pool. If you don't, then the process is reusued over and over again by the pool so the memory is never released. When set, the process will be allowed to die and a new one created in it's place. That will effectively clean up the memory.

I guess it's new in 2.7: http://docs.python.org/2/library/multiprocessing.html#module-multiprocessing.pool

2
  • 1
    I have been using this approach, works fine. Question is, why doesn't it release memory? Or maybe not fast enough...??
    – Elvin
    Nov 9, 2017 at 10:11
  • This completely solved my problem, thanks @user1914881
    – Scottymac
    Oct 5, 2018 at 13:05
4

You should probably call close() followed by wait() on your Pool object.

http://docs.python.org/library/multiprocessing.html#module-multiprocessing.pool

join() Wait for the worker processes to exit. One must call close() or terminate() before using join().

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