12

enter image description here

Jupyter Notebook

I am using multiprocessing module basically, I am still learning the capabilities of multiprocessing. I am using the book by Dusty Phillips and this code belongs to it.

import multiprocessing  
import random
from multiprocessing.pool import Pool

def prime_factor(value):
    factors = []
    for divisor in range(2, value-1):
        quotient, remainder = divmod(value, divisor)
        if not remainder:
            factors.extend(prime_factor(divisor))
            factors.extend(prime_factor(quotient))
            break
        else:
            factors = [value]
    return factors

if __name__ == '__main__':
    pool = Pool()
    to_factor = [ random.randint(100000, 50000000) for i in range(20)]
    results = pool.map(prime_factor, to_factor)
    for value, factors in zip(to_factor, results):
        print("The factors of {} are {}".format(value, factors))

On the Windows PowerShell (not on jupyter notebook) I see the following

Process SpawnPoolWorker-5:
Process SpawnPoolWorker-1:
AttributeError: Can't get attribute 'prime_factor' on <module '__main__' (built-in)>

I do not know why the cell never ends running?

17

It seems that the problem in Jupyter notebook as in different ide is the design feature. Therefore, we have to write the function (prime_factor) into a different file and import the module. Furthermore, we have to take care of the adjustments. For example, in my case, I have coded the function into a file known as defs.py

def prime_factor(value):
    factors = []
    for divisor in range(2, value-1):
        quotient, remainder = divmod(value, divisor)
        if not remainder:
            factors.extend(prime_factor(divisor))
            factors.extend(prime_factor(quotient))
            break
        else:
            factors = [value]
    return factors

Then in the jupyter notebook I wrote the following lines

import multiprocessing  
import random
from multiprocessing import Pool
import defs



if __name__ == '__main__':
    pool = Pool()
    to_factor = [ random.randint(100000, 50000000) for i in range(20)]
    results = pool.map(defs.prime_factor, to_factor)
    for value, factors in zip(to_factor, results):
        print("The factors of {} are {}".format(value, factors))

This solved my problem

enter image description here

  • It works using Pool but doesn't work using Process. What could be the reason? – Mikhail_Sam Apr 10 at 9:18
1

To execute a function without having to write it into a separated file manually:

We can dynamically write the task to process into a temporary file, import it and execute the function.

from multiprocessing import Pool
from functools import partial
import inspect

def parallal_task(func, iterable, *params):

    with open(f'./tmp_func.py', 'w') as file:
        file.write(inspect.getsource(func).replace(func.__name__, "task"))

    from tmp_func import task

    if __name__ == '__main__':
        func = partial(task, params)
        pool = Pool(processes=8)
        res = pool.map(func, iterable)
        pool.close()
        return res
    else:
        raise "Not in Jupyter Notebook"

We can then simply call it in a notebook cell like this:

def long_running_task(params, id):
    # Heavy job here
    return params, id

data_list = range(8)

for res in parallal_task(long_running_task, data_list, "a", 1, "b"):
    print(res) 

Ouput:

('a', 1, 'b') 0
('a', 1, 'b') 1
('a', 1, 'b') 2
('a', 1, 'b') 3
('a', 1, 'b') 4
('a', 1, 'b') 5
('a', 1, 'b') 6
('a', 1, 'b') 7

Note: If you're using Anaconda and if you want to see the progress of the heavy task, you can use print() inside long_running_task(). The content of the print will be displayed in the Anaconda Prompt console.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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