I'm half-tempted to write my own, but I don't really have enough time right now. I've seen the Wikipedia list of open source crawlers but I'd prefer something written in Python. I realize that I could probably just use one of the tools on the Wikipedia page and wrap it in Python. I might end up doing that - if anyone has any advice about any of those tools, I'm open to hearing about them. I've used Heritrix via its web interface and I found it to be quite cumbersome. I definitely won't be using a browser API for my upcoming project.

Thanks in advance. Also, this is my first SO question!


8 Answers 8

  • Mechanize is my favorite; great high-level browsing capabilities (super-simple form filling and submission).
  • Twill is a simple scripting language built on top of Mechanize
  • BeautifulSoup + urllib2 also works quite nicely.
  • Scrapy looks like an extremely promising project; it's new.
  • 3
    Add urrlib2 to Beautiful Soup and you have a good combination of tools.
    – S.Lott
    Commented Jan 7, 2009 at 11:16
  • 11
    those libraries can be used for crawling, but they are not crawlers themselves
    – hoju
    Commented Mar 17, 2010 at 6:16
  • 1
    using scrapy, for example, it's really trivial to create your set of rules for a scraping. Haven't tried any others, but Scrapy is really nice piece of code. Commented Apr 20, 2010 at 20:18
  • @RexE, any advice for how to use Mechanize to collect data from a specific webpage or any example on how to use Mechanize to do some real job not just demo? Thanks in advance.
    – Alcott
    Commented Sep 13, 2011 at 11:40

Use Scrapy.

It is a twisted-based web crawler framework. Still under heavy development but it works already. Has many goodies:

  • Built-in support for parsing HTML, XML, CSV, and Javascript
  • A media pipeline for scraping items with images (or any other media) and download the image files as well
  • Support for extending Scrapy by plugging your own functionality using middlewares, extensions, and pipelines
  • Wide range of built-in middlewares and extensions for handling of compression, cache, cookies, authentication, user-agent spoofing, robots.txt handling, statistics, crawl depth restriction, etc
  • Interactive scraping shell console, very useful for developing and debugging
  • Web management console for monitoring and controlling your bot
  • Telnet console for low-level access to the Scrapy process

Example code to extract information about all torrent files added today in the mininova torrent site, by using a XPath selector on the HTML returned:

class Torrent(ScrapedItem):

class MininovaSpider(CrawlSpider):
    domain_name = 'mininova.org'
    start_urls = ['http://www.mininova.org/today']
    rules = [Rule(RegexLinkExtractor(allow=['/tor/\d+']), 'parse_torrent')]

    def parse_torrent(self, response):
        x = HtmlXPathSelector(response)
        torrent = Torrent()

        torrent.url = response.url
        torrent.name = x.x("//h1/text()").extract()
        torrent.description = x.x("//div[@id='description']").extract()
        torrent.size = x.x("//div[@id='info-left']/p[2]/text()[2]").extract()
        return [torrent]

Check the HarvestMan, a multi-threaded web-crawler written in Python, also give a look to the spider.py module.

And here you can find code samples to build a simple web-crawler.


I've used Ruya and found it pretty good.

  • Looks like Ruya can't be downloaded anymore ? I can't find their tarball anywhere. Commented Jun 8, 2012 at 9:34

I hacked the above script to include a login page as I needed it to access a drupal site. Not pretty but may help someone out there.


import httplib2
import urllib
import urllib2
from cookielib import CookieJar
import sys
import re
from HTMLParser import HTMLParser

class miniHTMLParser( HTMLParser ):

  viewedQueue = []
  instQueue = []
  headers = {}
  opener = ""

  def get_next_link( self ):
    if self.instQueue == []:
      return ''
      return self.instQueue.pop(0)

  def gethtmlfile( self, site, page ):
        url = 'http://'+site+''+page
        response = self.opener.open(url)
        return response.read()
    except Exception, err:
        print " Error retrieving: "+page
        sys.stderr.write('ERROR: %s\n' % str(err))
    return "" 

    return resppage

  def loginSite( self, site_url ):
    cj = CookieJar()
    self.opener = urllib2.build_opener(urllib2.HTTPCookieProcessor(cj))

    url = 'http://'+site_url 
        params = {'name': 'customer_admin', 'pass': 'customer_admin123', 'opt': 'Log in', 'form_build_id': 'form-3560fb42948a06b01d063de48aa216ab', 'form_id':'user_login_block'}
    user_agent = 'Mozilla/4.0 (compatible; MSIE 5.5; Windows NT)'
    self.headers = { 'User-Agent' : user_agent }

    data = urllib.urlencode(params)
    response = self.opener.open(url, data)
    print "Logged in"
    return response.read() 

    except Exception, err:
    print " Error logging in"
    sys.stderr.write('ERROR: %s\n' % str(err))

    return 1

  def handle_starttag( self, tag, attrs ):
    if tag == 'a':
      newstr = str(attrs[0][1])
      print newstr
      if re.search('http', newstr) == None:
        if re.search('mailto', newstr) == None:
          if re.search('#', newstr) == None:
            if (newstr in self.viewedQueue) == False:
              print "  adding", newstr
              self.instQueue.append( newstr )
              self.viewedQueue.append( newstr )
            print "  ignoring", newstr
          print "  ignoring", newstr
        print "  ignoring", newstr

def main():

  if len(sys.argv)!=3:
    print "usage is ./minispider.py site link"

  mySpider = miniHTMLParser()

  site = sys.argv[1]
  link = sys.argv[2]

  url_login_link = site+"/node?destination=node"
  print "\nLogging in", url_login_link
  x = mySpider.loginSite( url_login_link )

  while link != '':

    print "\nChecking link ", link

    # Get the file from the site and link
    retfile = mySpider.gethtmlfile( site, link )

    # Feed the file into the HTML parser

    # Search the retfile here

    # Get the next link in level traversal order
    link = mySpider.get_next_link()


  print "\ndone\n"

if __name__ == "__main__":

Trust me nothing is better than curl.. . the following code can crawl 10,000 urls in parallel in less than 300 secs on Amazon EC2

CAUTION: Don't hit the same domain at such a high speed.. .

#! /usr/bin/env python
# -*- coding: iso-8859-1 -*-
# vi:ts=4:et
# $Id: retriever-multi.py,v 1.29 2005/07/28 11:04:13 mfx Exp $

# Usage: python retriever-multi.py <file with URLs to fetch> [<# of
#          concurrent connections>]

import sys
import pycurl

# We should ignore SIGPIPE when using pycurl.NOSIGNAL - see
# the libcurl tutorial for more info.
    import signal
    from signal import SIGPIPE, SIG_IGN
    signal.signal(signal.SIGPIPE, signal.SIG_IGN)
except ImportError:

# Get args
num_conn = 10
    if sys.argv[1] == "-":
        urls = sys.stdin.readlines()
        urls = open(sys.argv[1]).readlines()
    if len(sys.argv) >= 3:
        num_conn = int(sys.argv[2])
    print "Usage: %s <file with URLs to fetch> [<# of concurrent connections>]" % sys.argv[0]
    raise SystemExit

# Make a queue with (url, filename) tuples
queue = []
for url in urls:
    url = url.strip()
    if not url or url[0] == "#":
    filename = "doc_%03d.dat" % (len(queue) + 1)
    queue.append((url, filename))

# Check args
assert queue, "no URLs given"
num_urls = len(queue)
num_conn = min(num_conn, num_urls)
assert 1 <= num_conn <= 10000, "invalid number of concurrent connections"
print "PycURL %s (compiled against 0x%x)" % (pycurl.version, pycurl.COMPILE_LIBCURL_VERSION_NUM)
print "----- Getting", num_urls, "URLs using", num_conn, "connections -----"

# Pre-allocate a list of curl objects
m = pycurl.CurlMulti()
m.handles = []
for i in range(num_conn):
    c = pycurl.Curl()
    c.fp = None
    c.setopt(pycurl.FOLLOWLOCATION, 1)
    c.setopt(pycurl.MAXREDIRS, 5)
    c.setopt(pycurl.CONNECTTIMEOUT, 30)
    c.setopt(pycurl.TIMEOUT, 300)
    c.setopt(pycurl.NOSIGNAL, 1)

# Main loop
freelist = m.handles[:]
num_processed = 0
while num_processed < num_urls:
    # If there is an url to process and a free curl object, add to multi stack
    while queue and freelist:
        url, filename = queue.pop(0)
        c = freelist.pop()
        c.fp = open(filename, "wb")
        c.setopt(pycurl.URL, url)
        c.setopt(pycurl.WRITEDATA, c.fp)
        # store some info
        c.filename = filename
        c.url = url
    # Run the internal curl state machine for the multi stack
    while 1:
        ret, num_handles = m.perform()
        if ret != pycurl.E_CALL_MULTI_PERFORM:
    # Check for curl objects which have terminated, and add them to the freelist
    while 1:
        num_q, ok_list, err_list = m.info_read()
        for c in ok_list:
            c.fp = None
            print "Success:", c.filename, c.url, c.getinfo(pycurl.EFFECTIVE_URL)
        for c, errno, errmsg in err_list:
            c.fp = None
            print "Failed: ", c.filename, c.url, errno, errmsg
        num_processed = num_processed + len(ok_list) + len(err_list)
        if num_q == 0:
    # Currently no more I/O is pending, could do something in the meantime
    # (display a progress bar, etc.).
    # We just call select() to sleep until some more data is available.

# Cleanup
for c in m.handles:
    if c.fp is not None:
        c.fp = None

Another simple spider Uses BeautifulSoup and urllib2. Nothing too sophisticated, just reads all a href's builds a list and goes though it.



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