I want to run a bunch of jobs in parallel and then continue once all the jobs are finished. I've got something like

# based on example code from https://pymotw.com/2/multiprocessing/basics.html
import multiprocessing
import random
import time

def worker(num):
    """A job that runs for a random amount of time between 5 and 10 seconds."""
    print('Worker:' + str(num) + ' finished')

if __name__ == '__main__':
    jobs = []
    for i in range(5):
        p = multiprocessing.Process(target=worker, args=(i,))

    # Iterate through the list of jobs and remove one that are finished, checking every second.
    while len(jobs) > 0:
        jobs = [job for job in jobs if job.is_alive()]

    print('*** All jobs finished ***')

it works, but I'm sure there must be a better way to wait for all the jobs to finish than iterating over them again and again until they are done.

2 Answers 2


What about?

for job in jobs:

This blocks until the first process finishes, then the next one and so on. See more about join()

  • 7
    Note to future searchers: This usage can be indicative of a task that would benefit from a Pool.
    – kungphu
    Oct 20, 2017 at 7:22
  • 2
    What will happen if the job is already completed and we call join() method on that object? Aug 19, 2019 at 22:40
  • @EngineeredBrain It will return immediately
    – jayant
    Aug 20, 2019 at 1:57
  • If I spawn a job from a different thread. (Timer Thread t creates Job j and starts it). And I finish the main thread, will the main thread also wait for job j to finish? And how about if t is a daemon thread. Can I still be sure that Job j will always finish, no matter if the parent threads have finished, even without calling .join?
    – AgentM
    Apr 6, 2020 at 12:51
  • This is correct but can be dangerous if combined with multiprocessingQueue. If you try to append an end result to a queue, when the process in already joined, it will hang the parent process. Aug 28, 2020 at 14:09

You can make use of join. It let you wait for another process to end.

t1 = Process(target=f, args=(x,))
t2 = Process(target=f, args=('bob',))



You can also use barrier It works as for threads, letting you specify a number of process you want to wait on and once this number is reached the barrier free them. Here client and server are asumed to be spawn as Process.

b = Barrier(2, timeout=5)

def server():
    while True:
        connection = accept_connection()

def client():
    while True:
        connection = make_connection()

And if you want more functionalities like sharing data and more flow control you can use a manager.


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