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I'm using the cloudfile module to upload files to rackspace cloud files, using something like this pseudocode:

import cloudfiles

username = '---'
api_key = '---'

conn = cloudfiles.get_connection(username, api_key)
testcontainer = conn.create_container('test')

for f in get_filenames():
    obj = testcontainer.create_object(f)
    obj.load_from_filename(f)

My problem is that I have a lot of small files to upload, and it takes too long this way.

Buried in the documentation, I see that there is a class ConnectionPool, which supposedly can be used to upload files in parallell.

Could someone please show how I can make this piece of code upload more than one file at a time?

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1 Answer 1

up vote 7 down vote accepted
+250

The ConnectionPool class is meant for a multithreading application that ocasionally has to send something to rackspace.

That way you can reuse your connection but you don't have to keep 100 connections open if you have 100 threads.

You are simply looking for a multithreading/multiprocessing uploader. Here's an example using the multiprocessing library:

import cloudfiles
import multiprocessing

USERNAME = '---'
API_KEY = '---'


def get_container():
    conn = cloudfiles.get_connection(USERNAME, API_KEY)
    testcontainer = conn.create_container('test')
    return testcontainer

def uploader(filenames):
    '''Worker process to upload the given files'''
    container = get_container()

    # Keep going till you reach STOP
    for filename in iter(filenames.get, 'STOP'):
        # Create the object and upload
        obj = container.create_object(filename)
        obj.load_from_filename(filename)

def main():
    NUMBER_OF_PROCESSES = 16

    # Add your filenames to this queue
    filenames = multiprocessing.Queue()

    # Start worker processes
    for i in range(NUMBER_OF_PROCESSES):
        multiprocessing.Process(target=uploader, args=(filenames,)).start()

    # You can keep adding tasks until you add STOP
    filenames.put('some filename')

    # Stop all child processes
    for i in range(NUMBER_OF_PROCESSES):
        filenames.put('STOP')

if __name__ == '__main__':
    multiprocessing.freeze_support()
    main()
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You don't need multiprocessing for IO bound tasks if cloudfiles API is thread-safe. pool = multiprocessing.Pool(); pool.map(upload_file, get_filenames()) seems like a simpler alternative if you decided to use multiprocessing. –  J.F. Sebastian Mar 12 '11 at 15:30
    
@WoLpH: Thank you very much for your answer! When I try your code I run into a TypeError: 'Queue' object is not iterable, is this a mistake I have made? –  Hobhouse Mar 12 '11 at 18:41
    
@J.F. Sebastian: As I understand it the ConnectionPool class is supposed to be thread-safe. I just can't wrap my head around how to incorporate your code suggestions into the code. –  Hobhouse Mar 12 '11 at 18:44
1  
@Hobhouse: that could be a problen on my end. Since I don't have a Rackspace account readily available I was only able to do limited testing. I wrote this code partially based on the multiprocessing examples. docs.python.org/library/multiprocessing.html#examples I see that args is not a tuple anymore, it should be args=(filenames,) –  Wolph Mar 12 '11 at 20:41
1  
@WoLpH: You could use a connection per worker if you cache the connection for each worker gist.github.com/… or you could use ConnectionPool gist.github.com/… –  J.F. Sebastian Mar 12 '11 at 21:56

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