I can download a file at a time with:
import urllib.request urls = ['foo.com/bar.gz', 'foobar.com/barfoo.gz', 'bar.com/foo.gz'] for u in urls: urllib.request.urlretrieve(u)
I could try to
subprocess it as such:
import subprocess import os def parallelized_commandline(command, files, max_processes=2): processes = set() for name in files: processes.add(subprocess.Popen([command, name])) if len(processes) >= max_processes: os.wait() processes.difference_update( [p for p in processes if p.poll() is not None]) #Check if all the child processes were closed for p in processes: if p.poll() is None: p.wait() urls = ['http://www.statmt.org/wmt15/training-monolingual-nc-v10/news-commentary-v10.en.gz', 'http://www.statmt.org/wmt15/training-monolingual-nc-v10/news-commentary-v10.cs.gz', 'http://www.statmt.org/wmt15/training-monolingual-nc-v10/news-commentary-v10.de.gz'] parallelized_commandline('wget', urls)
Is there any way to parallelize
urlretrieve without using
subprocess to cheat?
Given that I must resort to the "cheat" for now, is
subprocess.Popen the right way to download the data?
When using the
parallelized_commandline() above, it's using multi-thread but not multi-core for the
wget, is that normal? Is there a way to make it multi-core instead of multi-thread?