I'm having a funny issue with map_async that i can't figure out.
I'm using python's multiprocessing library with process pools. I'm trying to pass a list of strings to compare against and a list of strings to be compared to a function using map_async()
right now i have:
from multiprocessing import Pool, cpu_count import functools dictionary = /a/file/on/my/disk passin = /another/file/on/my/disk num_proc = cpu_count() dictionary = readFiletoList(fdict) dictionary = sortByLength(dictionary) words = readFiletoList(passin, 'WINDOWS-1252') words = sortByLength(words) result = pool.map_async(functools.partial(mpmine, dictionary=dictionary), [words], 1000) def readFiletoList(fname, fencode='utf-8'): linelist = list() with open(fname, encoding=fencode) as f: for line in f: linelist.append(line.strip()) return linelist def sortByLength(words): '''Takes an ordered iterable and sorts it based on word length''' return sorted(words, key=len) def mpmine(word, dictionary): '''Takes a tuple of length 2 with it's arguments. At least dictionary needs to be sorted by word length. If not, whacky results ensue. ''' results = dict() for pw in word: pwlen = len(pw) pwres = list() for word in dictionary: if len(word) > pwlen: break if word in pw: pwres.append(word) if len(pwres) > 0: results[pw] = pwres return results if __name__ == '__main__': main()
Both dictionary and words are lists of strings. This results in only one process being used instead of the amount I have set. If i take the square brackets off the variable 'words' it seems to iterate through each string's characters in turn and cause a mess.
What i would like to have happen is it take like 1000 strings out of words and pass them into the worker process and then get the results, because this is a ridiculously parallelisable task.
EDIT: Added more code to make what's going on more clear.