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I have a big list of remote file locations and local paths where I would like them to end up. Each file is small, but there are very many of them. I am generating this list within Python.

I would like to download all of these files as quickly as possible (in parallel) prior to unpacking and processing them. What is the best library or linux command-line utility for me to use? I attempted to implement this using multiprocessing.pool, but that did not work with the FTP library.

I looked into pycurl, and that seemed to be what I wanted, but I could not get it to run on Windows 7 x64.

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Your question says you're using Linux, but then you mention Windows 7, so which platform are you actually using, or do you need a cross-platform solution? – Aya Apr 25 '13 at 16:07
What was wrong with ftplib? – tdelaney Apr 25 '13 at 16:29

I normally use pscp to do things like this, and then call it using subprocess.Popen

for example:

pscp_command = '''"c:\program files\putty\pscp.exe" -pw <pwd> -p -scp -unsafe <file location on my   linux machine including machine name and login, can use wildcards here> <where you want the files to go on a windows machine>'''
p = subprocess.Popen( pscp_command, stdout=subprocess.PIPE, stderr=subprocess.PIPE )
stdout, stderr = p.communicate()

of course I'm assuming linux --> windows

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Try wget, a command line utility installed on most Linux distros, also available via Cygwin on Windows.

You may also have a look at Scrapy, which is a library/framework written in Python.

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In what sense is wget a perl utility? – Aya Apr 25 '13 at 16:01
It's written in Perl, isn't it? – piokuc Apr 25 '13 at 16:04
Nope. It's written in C. – Aya Apr 25 '13 at 16:05
Hmm, for a reason I was thinking it was a Perl program, sorry about that. I'm deleting 'Perl' from the answer. – piokuc Apr 25 '13 at 16:09

If youuse a Pool object from the multiprocessing module, urllib2 should handle FTP.

results = {}
def get_url(url):
        res = urllib2.urlopen(url)
        # url should start with 'ftp:'
        results[url] =
    except Exception:
        # add more meaningful exception handling if you need it. Eg, retry once etc. 
        results[url] = None
pool = Pool(processes=num_processes)
result = pool.map_async(get_url, url_list)

Of course, spawning processes will have some serious overhead. Non-blocking requests will almost certainly be faster if you can use a 3rd part module like twisted

Whether the overhead is a serious problem will depend on the relative magnitude of download times per file and network latency.

You can try implementing it using python threads rather than processes, but it gets a bit trickier. See the answer to this question to use urllib2 safely with threads. You would also need to use the multiprocessing.pool.ThreadPool instead of the regular Pool

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Know it's an old post but there is a perfect linux utility for this. If you are transferring files from a remote host, lftp is great! I mainly use it to quickly push stuff to my ftp server but it works great for pulling stuff off as well using the mirror command. It also has an option to copy a user defined number of files in parallel like you wanted. If you wanted to copy some files from a remote path to a local path your command line would look something like this;

cd some/remote/path
lcd some/local/path
mirror --reverse --parallel=2

Be very careful with this command though, just like other mirror commands if you screw it up, you WILL DELETE FILES.

For more options or documentation for lftp I've visited this site

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