I have a simple
main() function that processes a huge amount of data. Since I have an 8-Core machine with lots of ram I was suggested to use the
multiprocessing module of python to accelerate the processing. Each subprocess will take about 18 hours to finish.
Long story short, I have doubts that I understood the behaviour of the
multiprocessing module correctly.
I somehow start the different subprocesses like this:
def main(): data = huge_amount_of_data(). pool = multiprocessing.Pool(processes=cpu_cores) # cpu_cores is set to 8, since my cpu has 8 cores. pool.map(start_process, data_chunk) # data_chunk is a subset data.
I understand that starting this script is a process of its own, namely the main process that finishes after all the subprocesses are finished. Obviously the Main process does not eat much resources, since it will only prepare the data at first and spawn the subprocesses. Will it use a core for its own, too? Meaning will only be able to start 7 subprocesses instead of the 8 I liked to start above?
The core question is: Can I spawn 8 subprocesses and be sure, that they will work correctly parallel to each other?
By the way, the subprocesses do not interact in any way with each other and when they are finished, they each generate an sqlite database file where they store the results. So even the result_storage is handled separately.
What I want to avoide, is that I spawn a process who will hinder the others to run at full speed. I need the code to terminate in the aproximated 16 hours and not in double of the time, because I have more processes then cores. :-)
Thanks for any enlightening!