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I am trying to write a program which can download a large amount of web pages concurrently. I wanted to write a few small test scripts to see if I can grasp multithreading. It seems to work alright, but it's not nearly as stable or impressive as I had imagined. What am I doing wrong? How could I improve this?

class UrlMiner(threading.Thread):
    def __init__(self, url_queue, targets, visited, timeout=5):
        threading.Thread.__init__(self)
        self.queue = url_queue
        self.targets = targets
        self.visited = visited
        self.timeout = timeout

    def run(self):
        while True:
            try:
                url = self.queue.get() 
                #print 'Scraping {}'.format(url)

                web_page = ''
                #with contextlib.closing(urllib2.urlopen(url, 
                #                                        None, 
                #                                        self.timeout)) as page:

                #    web_page = page.read()

                data = urllib2.urlopen(url, None, self.timeout)
                web_page = data.read()
                data.close()

            except urllib2.HTTPError:
                pass
            except urllib2.URLError:
                pass
            except socket.error:
                pass
            except socket.timeout: 
                pass
            except httplib.IncompleteRead:
                pass
            except httplib.BadStatusLine:
                pass
            except httplib.InvalidURL:
                pass   

            if web_page:
                #print 'Successfully scraped ', url
                self.visited.good()
            else:
                #print 'Unsuccessfully scraped ', url
                pass

            self.visited.add(url)
            self.queue.task_done() 


def main():
    urls = []
    with open('unvisited.txt') as infile:
        for line in infile:
            urls.append(line)

    visited = SetWrapper()
    targets = SetWrapper()

    queue = Queue.Queue()
    for url in urls:
        queue.put(url)

    # worker daemons
    for i in range(0, 100):
        t = UrlMiner(queue, targets, visited, timeout=14)
        t.setDaemon(True)
        t.start()

    start_time = time.time()
    queue.join()

    ttime = time.time() - start_time
    print '{} sites were scrapped in {} seconds'.format(len(urls), ttime)
    print '{} were filled requests.'.format(visited.goodv)

The result for 100 threads and 1001 sites is as follows:

$ python test.py 1001 sites were scraped in 138.261109114 seconds 262 were filled requests.

The fewer threads I use the faster it and more successful (more filled requests). I have a good internet connection and I have tested on OSX and Linux and got the same results (8 cores, 8gb ram).

share|improve this question
    
Are you scraping different sites/domains? If you are trying to scrape one site with 100 parallel connection there is a possibility the server will hold the connections in queue or simply fail them. –  rplnt Mar 28 '12 at 14:34
    
1000 different websites/pages (some from the same domain but different pages). –  Corey Mar 28 '12 at 14:36
1  
Have you thought about using the multiprocessing module instead of threading? I think Pool is what you want for this. You may also want to check out Stackless Python –  ChrisP Mar 28 '12 at 14:36
1  
I suspect the GIL is biting you. –  Fred Larson Mar 28 '12 at 14:37
1  
I looked at multiprocessing but didn't see how it would differ from threads in this case? I hadn't heard of Stackless Python until now-- thanks –  Corey Mar 28 '12 at 14:42
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