Is the memory consumed by a process spawned by a
multiprocessing.Process going to be released once the process is joined?
The scenario I have in mind is roughly like this:
from multiprocessing import Process from multiprocessing import Queue import time import os def main(): tasks = Queue() for task in [1, 18, 1, 2, 5, 2]: tasks.put(task) num_proc = 3 # this many workers @ each point in time procs =  for j in range(num_proc): p = Process(target = run_q, args = (tasks,)) procs.append(p) p.start() # joines a worker once he's done while procs: for p in procs: if not p.is_alive(): p.join() # what happens to the memory allocated by run()? procs.remove(p) print p, len(procs) time.sleep(1) def run_q(task_q): while not task_q.empty(): # while's stuff to do, keep working task = task_q.get() run(task) def run(x): # do real work, allocates memory print x, os.getpid() time.sleep(3*x) if __name__ == "__main__": main()
In real code, the length of
tasks is much larger then the number of CPU cores, each
task is lightweight, different tasks take vastly different amount of CPU time (minutes to days) and vastly different amount of memory (from peanuts to a couple of GBs). All this memory is local to a
run, and there's no need to share it --- so the question is if it's released once a
run returns, and/or once a process is joined.