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I am trying to under stand the multiprocessing module. When should I use Pool.map over Process when I want to run a function several times consecutively with different arguments? What are the advantages and disadvantages of each?

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1 Answer 1

Pool.map spawns multiple process to achieve a certain task.

When you have tasks units which you want to work on in a separate process then you can directly spawn the process.

def execute_new_work(work=somefunction):
    p = multiprocessing.Process(target=work)

Pool can be used to manage a fixed number of workers.

When you have known amount of work units that you want to process using a same function but in parallel then instead of using for loop, you can use pool.map. This is just more convenient and easy

pool_size = multiprocessing.cpu_count() * 2
pool = multiprocessing.Pool(processes=pool_size,
outputs = pool.map(workon_fucntion, inputs)

As you can see this is quite pythonic and reminiscence of the map function in Python. What you can do with map, you can do with for loop.

Only thing to note here is that worker processes are fixed in advance and pool manages the work distribution to the workers which is quite nice.

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Should I use Process if I have multiple arguments and am running Python 2.6? –  idealistikz Jun 29 '12 at 19:49
@idealistikz: No I think multiple argument should not be an issue either way. Determine if you need a constant pool of workers and not just one off requirement. If it is one off then you may waste the workers in pool for doing nothing. :) –  pyfunc Jun 29 '12 at 21:00
Should I use Process if the function I am calling requires multiple arguments? If I am using Process in a for loop, isn't it spawning different processes based on the number of iterations? –  idealistikz Jun 30 '12 at 3:38
yes, it does spawn a different process in each iteration but you still need to do the job keeping - track processes and output etc. it is quite elegant to use pool then. –  pyfunc Jun 30 '12 at 3:57

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