I have a method in python that takes a large file as an input and return a file as an output.
I want to parallelize the process using multiprocessing (Pool). So for that I split the input file to let say 3 smaller files.
def A(self, input_file): .... .... .... output_file = out.txt #(path to output file) .... .... output_file = do_smth(input_file) return output_file
The way I want to gain performance through multiprocessing:
splited_input_file = split_file(input_file) p = Pool(5) list_of_output_files = p.map(A, splited_input_file, splited_input_file, splited_input_file) output_file = concatenate_files(list_of_output_files)
Now, my concern is since the output file in A (out.txt) is the same when the multiprocessing is running how the list_of_output_files will be distinguished and I concatenate them into a file as final output file. Any suggestion? Basically in the example above the file is divided into 3 files (splited_input_file) and expect 3 output files as well (list_of_output_files) but the path in A is the same (out.txt) and they might get accessed at the parallel processes and may mess up or loose some data.