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I'm making a web crawler to crawl about 5000 webpages on a website using Python. I thought I could speed up the process by launching more threads using the threading module. However, the actual speed is almost the same as one thread. The only explanation I can think of is that web server can only respond to one request at one time, or at least one request per IP. I'm not very familiar with web servers. Is my assumption correct? Is there any way to get around this restriction?

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closed as off topic by Juhana, M42, martin clayton, EdChum, akond Apr 14 '13 at 9:58

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Which webserver? –  FoolishSeth Apr 14 '13 at 5:05
How did you add more threads? What language are you writing this with? –  Blender Apr 14 '13 at 5:06
In general, web servers can handle way more than one request at a time... otherwise the web would probably fall over. Can you post your threading code? –  NG. Apr 14 '13 at 5:10
Can you post your code and a link to the website? –  Blender Apr 14 '13 at 5:12
@Jellyflower: Nginx was made to handle tons of simultaneous connections, so the problem is with your code. Can you post it? –  Blender Apr 14 '13 at 5:17
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1 Answer

It probably isn't the webserver. It probably is the GIL which frequently forces Python to run your many threads one thread at a time. Threads kind of suck as a means for adding parallel execution to python. Try processes instead. The simplest method (if you have a a list of urls and a function that downloads a single url):

from multiprocessing import Pool
p = Pool(processes=100)
p.map(download_func, urls)
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I already found the bug which was described in my comment under the question. Threads do work in this case. But I'll keep your advice in mind. Thanks! –  Jellyflower Apr 14 '13 at 6:14
+1 for using multiprocessing, I coded a crawler once, tried multithread but eventually shipped the code with multiprocessing, the problem was not only parallel fetching but also parsing, client was very happy seeing his 8 core going close to 100% –  tovmeod Apr 14 '13 at 8:23
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