Use Scrapy to Extract Data From HTML Tags

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Scrapy is a Python framework for creating web scraping applications. It provides a programming interface to crawl the web by identifying new links, and extracts structured data from the downloaded content.

This guide will provide you with instructions to build a spider which recursively checks all <a> tags of a website and tracks broken links. This guide is written for Python version 3.4 or above, and with Scrapy version 1.4. It will not work on a Python 2 environment.

Before You Begin

  1. If you have not already done so, create a Linode account and Compute Instance. See our Getting Started with Linode and Creating a Compute Instance guides.

  2. Follow our Setting Up and Securing a Compute Instance guide to update your system. You may also wish to set the timezone, configure your hostname, create a limited user account, and harden SSH access.

    Note
    This guide is written for a non-root user. Commands that require elevated privileges are prefixed with sudo. If you’re not familiar with the sudo command, see the Users and Groups guide.

Install a Python 3 Environment

On most systems, including Debian 9 and CentOS 7, the default Python version is 2.7, and the pip installer need to be installed manually.

On Debian 9 System

  1. Debian 9 is shipped is both Python 3.5 and 2.7, but 2.7 is the default. Change it with:

    update-alternatives --install /usr/bin/python python /usr/bin/python2.7 1
    update-alternatives --install /usr/bin/python python /usr/bin/python3.5 2
    
  2. Check you are using a Python 3 version:

    python --version
    
  3. Install pip, the Python package installer:

     sudo apt install python3-pip
    

On CentOS 7 System

  1. On a CentOS system, install Python, PIP and some dependencies from EPEL repositories:

     sudo yum install epel-release
     sudo yum install python34 python34-pip gcc python34-devel
    
  2. Replace the symbolic link /usr/bin/python that link by default to a Python 2 installation to the newly installed Python 3:

    sudo rm -f /usr/bin/python
    sudo ln -s /usr/bin/python3 /usr/bin/python
    
  3. Check you use the proper version with:

    python --version
    

Install Scrapy

System-wide installation is the easiest method, but may conflict with other Python scripts that require different library versions. Use this method only if your system is dedicated to Scrapy:

sudo pip3 install scrapy

Install Scrapy Inside a Virtual Environment

This is the recommended installation method. Scrapy will be installed in a virtualenv environment to prevent any conflicts with system wide library.

  1. On a CentOS system, virtualenv for Python 3 is installed with Python. However, on a Debian 9 it require a few more steps:

     sudo apt install python3-venv
     sudo pip3 install wheel
    
  2. Create your virtual environment:

    python -m venv ~/scrapyenv
    
  3. Activate your virtual environment:

    source ~/scrapyenv/bin/activate
    

    Your shell prompt will then change to indicate which environment you are using.

  4. Install Scrapy in the virtual environment. Note that you don’t need sudo anymore, the library will be installed only in your newly created virtual environment:

    pip3 install scrapy
    

Create Scrapy Project

All the following commands are done inside the virtual environment. If you restart your session, don’t forget to reactivate scrapyenv.

  1. Create a directory to hold your Scrapy project:

    mkdir ~/scrapy
    cd ~/scrapy
    scrapy startproject linkChecker
    
  2. Go to your new Scrapy project and create a spider. This guide uses a starting URL for scraping http://www.example.com. Adjust it to the web site you want to scrape.

    cd linkChecker
    scrapy genspider link_checker www.example.com
    

    This will create a file ~/scrapy/linkChecker/linkChecker/spiders/link_checker.py with a base spider.

    Note
    All path and commands in the below section are relative to the new scrapy project directory ~/scrapy/linkChecker.

Run Your Spider

  1. Start your spider with:

    `scrapy crawl`
    

    The Spider registers itself in Scrapy with its name that is defined in the name attribute of your Spider class.

  2. Start the link_checker Spider:

    cd ~/scrapy/linkChecker
    scrapy crawl link_checker
    

    The newly created spider does nothing more than downloads the page www.example.com. We will now create the crawling logic.

Use the Scrapy Shell

Scrapy provides two easy ways for extracting content from HTML:

  • The response.css() method get tags with a CSS selector. To retrieve all links in a btn CSS class:

     response.css("a.btn::attr(href)")
    
  • The response.xpath() method gets tags from a XPath query. To retrieve the URLs of all images that are inside a link, use:

     response.xpath("//a/img/@src")
    

You can try your selectors with the interactive Scrapy shell:

  1. Run the Scrapy shell on your web page:

    scrapy shell "http://www.example.com"
    
  2. Test some selectors until you get what you want:

    response.xpath("//a/@href").extract()
    

For more information about Selectors, refer to the Scrapy selector documentation .

Write the Crawling Logic

The Spider parses the downloaded pages with the parse(self,response) method. This method returns an iterable of new URLs that will be added to the downloading queue for future crawling and parsing.

  1. Edit your linkChecker/spiders/link_checker.py file to extract all the <a> tags and get the href link text. Return the link URL with the yield keyword to add it to the download queue:

    File: linkChecker/spiders/link_checker.py
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    import scrapy
    
    class LinkCheckerSpider(scrapy.Spider):
        name = 'link_checker'
        allowed_domains = ['www.example.com']
        start_urls = ['http://www.example.com/']
    
        def parse(self, response):
            """ Main function that parses downloaded pages """
            # Print what the spider is doing
            print(response.url)
            # Get all the <a> tags
            a_selectors = response.xpath("//a")
            # Loop on each tag
            for selector in a_selectors:
                # Extract the link text
                text = selector.xpath("text()").extract_first()
                # Extract the link href
                link = selector.xpath("@href").extract_first()
                # Create a new Request object
                request = response.follow(link, callback=self.parse)
                # Return it thanks to a generator
                yield request
  2. Run your updated Spider:

    scrapy crawl link_checker
    

    You will then see the Spider going through all the links. It won’t go out of the www.example.com domain because of the allowed_domains attribute. Depending of the size of the site, this may take some time. Stop the process with Ctrl+C.

Add Request Meta Information

The Spider will traverse links in queue recursively. When parsing a downloaded page, it does not have any information about the previously parsed pages such as which page was linking the new one. To pass more information to the parse method, Scrapy provides a Request.meta() method that attaches some key/value pairs to the request. They are available in the response object in the parse() method.

The meta information is used for two purposes:

  • To make the parse method aware of data coming from the page that triggered the request: the URL of the page (from_url), and the text of the link (from_text)

  • To compute the level of recursion in the parse method so the maximum depth of the crawling can be limited.

  1. Starting with the previous spider, add an attribute to store the maximum depth (maxdepth) and update the parse function to the following:

    File: linkChecker/spiders/link_checker.py
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    # Add a maxdepth attribute
    maxdepth = 2
    
    def parse(self, response):
        # Set default meta information for first page
        from_url = ''
        from_text = ''
        depth = 0;
        # Extract the meta information from the response, if any
        if 'from' in response.meta:
            from_url = response.meta['from']
        if 'text' in response.meta:
            from_text = response.meta['text']
        if 'depth' in response.meta:
            depth = response.meta['depth']
    
        # Update the print logic to show what page contain a link to the
        # current page, and what was the text of the link
        print(depth, reponse.url, '<-', from_url, from_text, sep=' ')
        # Browse a tags only if maximum depth has not be reached
        if depth < self.maxdepth:
            a_selectors = response.xpath("//a")
            for selector in a_selectors:
                text = selector.xpath("text()").extract_first()
                link = selector.xpath("@href").extract_first()
                request = response.follow(link, callback=self.parse)
                # Meta information: URL of the current page
                request.meta['from'] = response.url
                # Meta information: text of the link
                request.meta['text'] = text
                # Meta information: depth of the link
                request.meta['depth'] = depth + 1
                yield request
  2. Run the updated spider:

    scrapy crawl link_checker
    

    Your spider will no longer go deeper than 2 pages and will stop by itself when all the pages are downloaded. The output will show what page linked to the downloaded page and what was the text of link.

Set Handled HTTP Status

By default Scrapy parses only successful HTTP requests; all errors are excluded from parsing. To collect the broken links, the 404 responses must be parsed as well. Create two arrays, valid_url and invalid_url, that will store the valid and the broken links respectively.

  1. Set the list of HTTP error status that are parsed in the handle_httpstatus_list spider attribute:

    handle_httpstatus_list = [404]
    
  2. Update the parsing logic to check for HTTP status and populate the good array. The spider now looks like:

    File: linkChecker/spiders/link_checker.py
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    class LinkCheckerSpider(scrapy.Spider):
        name = "link_checker"
        allowed_domains = ['www.example.com']
        # Set the HTTP error codes that should be handled
        handle_httpstatus_list = [404]
        # Initialize array for valid/invalid links
        valid_url, invalid_url = [], []
        maxdepth = 2
    
        def parse(self, response):
            from_url = ''
            from_text = ''
            depth = 0;
            if 'from' in response.meta: from_url = response.meta['from']
            if 'text' in response.meta: from_text = response.meta['text']
            if 'depth' in response.meta: depth = response.met['depth']
    
            # 404 error, populate the broken links array
            if response.status == 404:
                self.invalid_url.append({'url': response.url,
                                         'from': from_url,
                                         'text': from_text})
            else:
                # Populate the working links array
                self.valid_url.append({'url': response.url,
                                       'from': from_url,
                                       'text': from_text})
                if depth < self.maxdepth:
                    a_selectors = response.xpath("//a")
                    for selector in a_selectors:
                        text = selector.xpath("text()").extract_first()
                        link = selector.xpath("@href").extract_first()
                        request = response.follow(link, callback=self.parse)
                        request.meta['from'] = response.url;
                        request.meta['text'] = text
                        yield request
  3. Run your updated spider:

    scrapy crawl link_checker
    

    This should print nothing more than before. The two arrays are populated but never printed to console. A spider has to dump them at the end of the crawling with signal handlers.

Set Signal Handlers

Scrapy lets you add some handlers at various points in the scraping process. Signal handlers are set with the crawler.signals.connect() method and the crawler object being available in the from_crawler() method of the Spider class.

To add a handler at the end of the scraping process to print information about broken links, overwrite the from_crawler method to register a handler for the signals.spider_closed signal:

File: linkChecker/spiders/link_checker.py
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# Overwrite the from_crawler method
@classmethod
def from_crawler(cls, crawler, *args, **kwargs):
    # call the parent method to keep things working
    spider = super(LinkCheckerSpider, cls).from_crawler(crawler, *args, **kwargs)
    # Register the spider_closed handler on spider_closed signal
    crawler.signals.connect(spider.spider_closed, signals.spider_closed)
    return spider

# This method is the actual handler
def spider_closed(self):
    # Print some pretty message about what has been crawled
    print('There are', len(self.valid_url), 'working links and',
          len(self.invalid_url), 'broken links.', sep=' ')
    # If any, print all the broken links
    if len(self.invalid_url) > 0:
        print("Broken links are:")
        for invalid in self.invalid_url:
            print(invalid)

See Scrapy Signals documentation for a full list of available Signals.

Run the Spider again, and you will see the detail of the broken links before the Scrapy statistics.

Get Start URL from Command Line

The starting URL is hardcoded in the source code of your spider. It will be far better if we could set it when starting the spider, without changing the code. The scrapy crawl command line allow passing parameters from the command line that is passed through the __init__() class constructor.

  1. Add a __init__() method to our spider with a url parameter:

    File: linkChecker/spiders/link_checker.py
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    # Add a custom constructor with the url parameter
    def __init__(self, url='http://www.example.com', *args, **kwargs):
        # Don't forget to call parent constructor
        super(LinkCheckerSpider, self).__init__(*args, **kwargs)
        # Set the start_urls to be the one given in url parameters
        self.start_urls = [url]
  2. Spider arguments are passed with the -a command line flag:

    scrapy crawl linkChecker -a url="http://another_example.com"
    

Edit your Project Settings

Default Scrapy settings of your spider are defined in settings.py file. Set the maximum download size to 3 MB to prevent Scrapy from downloading big files like video or binaries.

Edit ~/scrapy/linkChecker/linkChecker/settings.py and add the following line:

File: linkChecker/settings.py
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DOWNLOAD_MAXSIZE = 3000000

Remove Domain Limitation

Our spider has an attribute called allowed_domains to prevent downloading unwanted URLs. Without this attribute, the spider may attempt to traverse the entire web and never complete its task.

If a link in the www.example.com domain to an external domain is broken, it will be undetected because the spider will not crawl it. Delete the allowed_domains attribute to add a custom logic that will download an external domain page, but not recursively browse its links.

  1. Add to package for URL and regex management:

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    import re
    from urllib.parse import urlparse
  2. Add a domain = '' attribute that will hold the main domain. It starts uninitialized and is set at the first download be the actual URL. The actual URL may be different than the starting URL in case of HTTP redirect.

  3. Remove the allowed_domains attribute

  4. Initialize the domain attribute in the parse method:

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    if len(self.domain) == 0:
    parsed_uri = urlparse(response.url)
    self.domain = parsed_uri.netloc
  5. Update the expression to add domain check in addition to depth check for new URLs:

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    parsed_uri = urlparse(response.url)
    
    # Apply previous logic to new links
    if parsed_uri.netloc == self.domain and depth < self.maxdepth:

See the full spider in the next section where this code is integrated inside the previous additions.

Final Version of the Spider

Here is the fully functional spider. A few hacks have been added to get the domain of the response and prevent recursive browsing of other domains links. Otherwise, your spider will attempt to parse the whole web!

File: linkChecker/spiders/link_checker.py
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import re
from urllib.parse import urlparse

import scrapy
from scrapy import signals


class LinkCheckerSpider(scrapy.Spider):
    name = 'link_checker'
    # Set the HTTP error codes that should be handled
    handle_httpstatus_list = [404]
    valid_url = []
    invalid_url = []
    # Set the maximum depth
    maxdepth = 2;
    domain = ''

    def __init__(self, url='http://www.example.com', *args, **kwargs):
        super(LinkCheckerSpider, self).__init__(*args, **kwargs)
        self.start_urls = [url]

    @classmethod
    def from_crawler(cls, crawler, *args, **kwargs):
        spider = super(LinkCheckerSpider, cls).from_crawler(crawler, *args, **kwargs)
        # Register the spider_closed handler on spider_closed signal
        crawler.signals.connect(spider.spider_closed, signals.spider_closed)
        return spider

    def spider_closed(self):
        """ Handler for spider_closed signal."""
        print('----------')
        print('There are', len(self.valid_url), 'working links and',
              len(self.invalid_url), 'broken links.', sep=' ')
        if len(self.invalid_url) > 0:
            print('Broken links are:')
            for invalid in self.invalid_url:
                print(invalid)
        print('----------')

    def parse(self, response):
        """ Main method that parse downloaded pages. """
        # Set defaults for the first page that won't have any meta information
        from_url = ''
        from_text = ''
        depth = 0;
        # Extract the meta information from the response, if any
        if 'from' in response.meta: from_url = response.meta['from']
        if 'text' in response.meta: from_text = response.meta['text']
        if 'depth' in response.meta: depth = response.meta['depth']

        # If first response, update domain (to manage redirect cases)
        if len(self.domain) == 0:
            parsed_uri = urlparse(response.url)
            self.domain = parsed_uri.netloc

        # 404 error, populate the broken links array
        if response.status == 404:
            self.invalid_url.append({'url': response.url,
                                     'from': from_url,
                                     'text': from_text})
        else:
            # Populate the working links array
            self.valid_url.append({'url': response.url,
                                   'from': from_url,
                                   'text': from_text})
            # Extract domain of current page
            parsed_uri = urlparse(response.url)
            # Parse new links only:
            #   - if current page is not an extra domain
            #   - and depth is below maximum depth
            if parsed_uri.netloc == self.domain and depth < self.maxdepth:
                # Get all the <a> tags
                a_selectors = response.xpath("//a")
                # Loop on each tag
                for selector in a_selectors:
                    # Extract the link text
                    text = selector.xpath('text()').extract_first()
                    # Extract the link href
                    link = selector.xpath('@href').extract_first()
                    # Create a new Request object
                    request = response.follow(link, callback=self.parse)
                    request.meta['from'] = response.url;
                    request.meta['text'] = text
                    # Return it thanks to a generator
                    yield request

Monitor a Running Spider

Scrapy provides a telnet interface on port 6023 to monitor a running spider. The telnet session is a Python shell where you can execute methods on the exposed Scrapy object.

  1. Run your spider in the background:

    scrapy crawl link_checker -a url="http://www.linode.com" > 404.txt &
    
  2. Connect to the telnet interface:

    telnet localhost 6023
    
  3. Print a report of the Scrapy engine status:

    est()
    
  4. Pause your scraping

    engine.pause()
    
  5. Resume your scraping:

    engine.unpause()
    
  6. Stop your scraping;

    engine.stop()
    

More Information

You may wish to consult the following resources for additional information on this topic. While these are provided in the hope that they will be useful, please note that we cannot vouch for the accuracy or timeliness of externally hosted materials.

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