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I went through documentation https://docs.python.org/2/library/multiprocessing.html#managers and I don't quite understand what "It blocks until the result is ready" means.
Does it mean any of these:

  1. For pool.map(worker_num = 5), those 5 workers will work one by one and the result will block until it ready?

  2. For pool_job_1 = pool.map(4);pool_job_2 = pool.map(4). The pool_job_2 will only start after pool_job_1 finished?

I am favor of second explanation right now. This is important to what I am doing, since I want to run it by order and only one at a time. How can I achieve that? I can using lock and pass it into Process as argument:

for item in my_list:
    Process(func, (item,lock...))

And in my function, I add lock.acquire() and lock.release() to make sure it will run one process at a time. The problem with this method is: I will create too many processes (processes = length of my_list).

I am thinking adding lock in map function or set processes = 1 in pool.

Update:

By playing with dummy example, one should have clear idea about what map function is doing:

from multiprocessing import Process, Pool
import os
import time

def sleeper(args):
   name = args[0]
   seconds = args[1]
   print ('starting child process with id:%d '% os.getpid())
   print ('parent process:%d' % os.getppid())
   print ('sleeping for %s ' % seconds)
   time.sleep(seconds)
   print ("Done sleeping")


# if __name__ == '__main__':
#    print ("in parent process (id %d)" % os.getpid())
#    for j in reversed(range(10,15)):
#       p = Process(target=sleeper, args=('bob', j))
#       p.start()
#       print ("in parent process after child process start")
#       print ("parent process about to join child process")
#       p.join()
#       print ("in parent process after child process join")
#       print ("parent process exiting with id %d "% os.getpid())
#       print ("The parent's parent process:%d" % os.getppid())

if __name__ == '__main__':
   print ("in parent process (id %d)" % os.getpid())
   pool = Pool(1)
   pool.map(sleeper, [('bob',x) for x in reversed(range(10,15))], 1)

It starts whatever processes in the beginning, and divide your "iterable" into those processes. But one thing that I missed earlier is: it doesn't create new processes in the middle, instead, it uses processes it created in the beginning all the time.

4
  • 1
    If you want to run in order, one at a time, why are you using a pool of workers? There's overhead associated with parallelizing your code, and it sounds like you're explicitly wanting to run it in serial.
    – Jeff
    Aug 4, 2016 at 15:36
  • 1
    Explanation 2 is correct. pool.map() will block but will execute the mapping using available processes from the pool. If you depend on pool_job_1 to complete before pool_job_2, just following the pattern you described in Explanation 2.
    – theorifice
    Aug 4, 2016 at 15:38
  • @JeffL.Hi, Yea actually you are right. It is long story. Basically I am rewriting for loop in one python code using multiprocessing since memory issue. And after I finished that, I realized that for some limitations, I can only run my job one at a time..
    – Oldyoung
    Aug 4, 2016 at 15:40
  • Using pool actually will use more memory than just serial Python as it starts additional Python instances in the background as workers...
    – Matt
    Aug 5, 2016 at 15:16

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