32

I come here because I have an issue with my Jupiter's Python3 notebook. I need to create a function that uses the multiprocessing library. Before to implement it, I make some tests. I found a looooot of different examples but the issue is everytime the same : my code is executed but nothing happens in the notebook's interface :

enter image description here

The code i try to run on jupyter is this one :

import os

from multiprocessing import Process, current_process


def doubler(number):
    """
    A doubling function that can be used by a process
    """
    result = number * 2
    proc_name = current_process().name
    print('{0} doubled to {1} by: {2}'.format(
        number, result, proc_name))
    return result


if __name__ == '__main__':
    numbers = [5, 10, 15, 20, 25]
    procs = []
    proc = Process(target=doubler, args=(5,))

    for index, number in enumerate(numbers):
        proc = Process(target=doubler, args=(number,))
        proc2 = Process(target=doubler, args=(number,))
        procs.append(proc)
        procs.append(proc2)
        proc.start()
        proc2.start()

    proc = Process(target=doubler, name='Test', args=(2,))
    proc.start()
    procs.append(proc)

    for proc in procs:
        proc.join()

It's OK when I just run my code without Jupyter but with the command "python my_progrem.py" and I can see the logs : enter image description here

Is there, for my example, and in Jupyter, a way to catch the results of my two tasks (proc1 and proc2 which both call thefunction "doubler") in a variable/object that I could use after ? If "yes", how can I do it?

1

5 Answers 5

24

@Konate's answer really helped me. Here is a simplified version using multiprocessing.pool:

import multiprocessing

def double(a):
    return a * 2

def driver_func():
    PROCESSES = 4
    with multiprocessing.Pool(PROCESSES) as pool:
        params = [(1, ), (2, ), (3, ), (4, )]
        results = [pool.apply_async(double, p) for p in params]

        for r in results:
            print('\t', r.get())
driver_func()

enter image description here

8
  • 19
    @Kamen Tsvetkov, Thanks for sharing your approach. I tried it on my windows machine, it seems that driver_func() just hangs out there without outputting anything
    – user785099
    Jun 4, 2021 at 19:15
  • Thanks for sharing your solution. How did the runtime compare to the non-parallelized version?
    – kushy
    Aug 6, 2021 at 12:37
  • 4
    didn't work on mac + JupyterLab May 19, 2022 at 8:03
  • you release that this runs "asynchronously in a single process" not multiple, right? Check the AsyncResult object docs where they say this explicitly in the example
    – CpILL
    Sep 27, 2022 at 1:35
  • 1
    As previously said by user785099, this solution does not work on Windows: the code cell just hangs when executing. The solution for windows is here, simple and effective: jupyter-tutorial.readthedocs.io/en/stable/performance/… Dec 21, 2022 at 7:26
8

Another way of running multiprocessing jobs in a Jupyter notebook is to use one of the approaches supported by the nbmultitask package.

8

I succeed by using multiprocessing.pool. I was inspired by this approach :

def test():
    PROCESSES = 4
    print('Creating pool with %d processes\n' % PROCESSES)

with multiprocessing.Pool(PROCESSES) as pool:
    TASKS = [(mul, (i, 7)) for i in range(10)] + \
            [(plus, (i, 8)) for i in range(10)]

    results = [pool.apply_async(calculate, t) for t in TASKS]
    imap_it = pool.imap(calculatestar, TASKS)
    imap_unordered_it = pool.imap_unordered(calculatestar, TASKS)

    print('Ordered results using pool.apply_async():')
    for r in results:
        print('\t', r.get())
    print()

    print('Ordered results using pool.imap():')
    for x in imap_it:
        print('\t', x)

...etc For more, the code is at : https://docs.python.org/3.4/library/multiprocessing.html?

2

It would be good to clarify some things before to give the answer:

  • officially, as per the documentation, multiprocessing.Pool does not work on interactive interpreter (such as Jupyter notebooks). See also this answer.
  • unlike multiprocessing.Pool, multiprocessing.ThreadPool does work also in Jupyter notebooks

To make a generic Pool class working on both classic and interactive python interpreters I have made this:

def is_notebook() -> bool:
    try:
        if "get_ipython" in globals().keys():
            get_ipython = globals()["get_ipython"]
            shell = get_ipython().__class__.__name__
            if shell == "ZMQInteractiveShell":
                return True  # Jupyter notebook or qtconsole
        # elif shell == "TerminalInteractiveShell":
        #   return False  # Terminal running IPython
        #   else:
        return False  # Other type (?)
    except NameError:
        return False  # Probably standard Python interpreter


if is_notebook():
    from multiprocessing.pool import ThreadPool as Pool
    from threading import Lock
else:
    from multiprocessing.pool import Pool
    from multiprocessing import Lock

The following example works on both standard .py and jupyter .ipynb files.

#########################################
# Diversified import based on execution environment (notebook/standard interpreter)
#########################################
def is_notebook() -> bool:
    try:
        if "get_ipython" in globals().keys():
            get_ipython = globals()["get_ipython"]
            shell = get_ipython().__class__.__name__
            if shell == "ZMQInteractiveShell":
                return True  # Jupyter notebook or qtconsole
        # elif shell == "TerminalInteractiveShell":
        #   return False  # Terminal running IPython
        #   else:
        return False  # Other type (?)
    except NameError:
        return False  # Probably standard Python interpreter


if is_notebook():
    from multiprocessing.pool import ThreadPool as Pool
    from threading import Lock
else:
    from multiprocessing.pool import Pool
    from multiprocessing import Lock


#########################################
# Minimal program example
#########################################
import os
import random

from typing import Any, Iterator

def generate_values_for_parallel(max: int) -> Iterator[int]:
    for _ in range(0, max):
        yield random.random()


def parallel_unit(arg: Any) -> list[int]:
    return "Received --> " + str(arg)


if __name__ == '__main__':
    result = []
    pool = Pool(processes=4)
    for loop_result in pool.imap_unordered(parallel_unit, generate_values_for_parallel(10), 2*os.cpu_count()):
        result.append(loop_result)
    pool.close()
    pool.join()
    print("\n".join(result))
2
  • 1
    Pool and ThreadPool are completely different things and present different performances . See stackoverflow.com/questions/70700809/…
    – J. Choi
    Apr 5, 2023 at 4:43
  • J.Choi thanks for your clarification. The purposes of Pool and ThreadPool are different, obviously, but my solution is just to make the code portable and run the same code regardless the execution environment (standard interpreter or jupyter notebook). Apr 6, 2023 at 6:34
0

This works for me on MAC (cannot make it work on windows):

    import multiprocessing as mp
    mp_start_count = 0

    if __name__ == '__main__':
        if mp_start_count == 0:
            mp.set_start_method('fork')
            mp_start_count += 1

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.