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I have code like this.

for p in range(1,1000):
    result = False
    while result is False:
        ret = urllib2.Request('http://server/?'+str(p))
            result = process(urllib2.urlopen(ret).read())
        except (urllib2.HTTPError, urllib2.URLError):

I would like to make two or three request at the same time to accelerate this. Can I use urllib2 for this, and how? If not which other library should I use? Thanks.

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Either you figure out threads, or you use Twisted (which is asynchronous).

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coroutine-based libraries have the benefits of both and simpler than threads and Twisted: gevent, eventlet, concurrence – Denis Bilenko Nov 8 '10 at 6:34

Take a look at gevent — a coroutine-based Python networking library that uses greenlet to provide a high-level synchronous API on top of libevent event loop.


# Copyright (c) 2009 Denis Bilenko. See LICENSE for details.

"""Spawn multiple workers and wait for them to complete"""

urls = ['', '', '']

import gevent
from gevent import monkey

# patches stdlib (including socket and ssl modules) to cooperate with other greenlets

import urllib2

def print_head(url):
    print 'Starting %s' % url
    data = urllib2.urlopen(url).read()
    print '%s: %s bytes: %r' % (url, len(data), data[:50])

jobs = [gevent.spawn(print_head, url) for url in urls]

share|improve this answer

maybe using multiprocessing and divide you work on 2 process or so .

Here is an example (it's not tested)

import multiprocessing
import Queue
import urllib2

NUM_URL = 1000

class DownloadProcess(multiprocessing.Process):
    """Download Process """

    def __init__(self, urls_queue, result_queue):


        self.urls = urls_queue
        self.result = result_queue

    def run(self):
        while True:

                 url = self.urls.get_nowait()
             except Queue.Empty:

             ret = urllib2.Request(url)
             res = urllib2.urlopen(ret)

                 result =
             except (urllib2.HTTPError, urllib2.URLError):


def main():

    main_url = 'http://server/?%s'

    urls_queue = multiprocessing.Queue()
    for p in range(1, NUM_URL):
        urls_queue.put(main_url % p)

    result_queue = multiprocessing.Queue()

    for i in range(NUM_PROCESS):
        download = DownloadProcess(urls_queue, result_queue)

    results = []
    while result_queue:
        result = result_queue.get()

    return results

if __name__ == "__main__":
    results = main()

    for res in results:
share|improve this answer
Threading is the right answer, not complex layered things like Twisted. I'd use threading rather than multiprocessing; the process-based multiprocessing module is only needed for CPU-bound tasks, not this I/O-bound one. – Glenn Maynard Jan 1 '13 at 19:39

You can use asynchronous IO to do this.

requests + gevent = grequests

GRequests allows you to use Requests with Gevent to make asynchronous HTTP Requests easily.

import grequests

urls = [

rs = (grequests.get(u) for u in urls)
share|improve this answer

I know this question is a little old, but I thought it might be useful to promote another async solution built on the requests library.

list_of_requests = ['', '', ...]

from simple_requests import Requests
for response in Requests().swarm(list_of_requests):
    print response.content

The docs are here:

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