1

I'm running a script on multiple csv files using multiprocessing.
If a line matches the regex, it writes the line to (a) new file(s) (new file name equals match).
I've noticed a problem writing to the same file(s) from different processes (file lock). How can i fix this ?

My code:

import re
import glob
import os
import multiprocessing

pattern ='abc|def|ghi|jkl|mno'
regex = re.compile(pattern, re.IGNORECASE)

def process_files (file):
    res_path = r'd:\results'
    with open(file, 'r+', buffering=1) as ifile:
        for line in ifile:
            matches = set(regex.findall(line))
            for match in matches:
                res_file = os.path.join(res_path, match + '.csv') 
                with open(res_file, 'a') as rf:
                    rf.write(line)

def main():

    p = multiprocessing.Pool()
    for file in glob.iglob(r'D:\csv_files\**\*.csv', recursive=True):
        p.apply_async(process, [file]) 

    p.close()
    p.join()

if __name__ == '__main__':
    main()

Thanks in advance!

  • notice: you are never actually opening file to write in process_files, it is just a string with the path (as yielded by glob.iglob) – Adam.Er8 Jun 12 at 11:24
  • 1
    Copy paste errors. Apologies ... a little too fast. Edited it. – John Doe Jun 12 at 11:30
3

Make the filename unique for each subprocess:

def process_files (file, id):
    res_path = r'd:\results'
    for line in file:
        matches = set(regex.findall(line))
        for match in matches:
            filename = "{}_{}.csv".format(match, id)
            res_file = os.path.join(res_path, filename) 
            with open(res_file, 'a') as rf:
                rf.write(line)

def main():

    p = multiprocessing.Pool()
    for id, file in enumerate(glob.iglob(r'D:\csv_files\**\*.csv', recursive=True)):
        p.apply_async(process, [file, id]) 

then you will have to add some code to consolidate the different "_.csv" files in single ".csv" files.

Concurrent writes on a same file is something you want to avoid - either you don't have file locks and you end up with corrupted data, or you have file locks and then it will slow down the process, which defeats the whole point of parallelizing it.

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.