A tool for detecting technologies used by web applications.


License
GPL-3.0
Install
pip install wad==0.4.6

Documentation

WAD - Web application detector

Build Status PyPI

WAD lets you analyze given URL(s) and detect technologies used by web application behind that URL, from the OS and web server level, to the programming platform and frameworks, as well as server- and client-side applications, tools and libraries.

For example, results of scan of server might include:

  • OS: Windows, Linux...
  • Web server: Apache, Nginx, IIS...
  • Programming platform: PHP, Python, Ruby, Java...
  • Content management systems: Drupal, WordPress...
  • Frameworks: AngularJS, Ruby on Rails, Django...
  • various databases, analytics tools, javascript libaries, CDNs, comment systems, search engines and many others.

How it works

WAD is built as a standalone application, using Wappalyzer's detection rules. It sends a GET request to the given URL and analyzes both HTTP response header and body (HTML page), looking for indications to discover web technologies used.

Detection results may include information about versions of technologies used, for example Linux distro or Apache version. Results are categorized depending on type of technology (whether it is CMS or database etc.). There are now over 700 technologies that can be discovered using WAD.

Installation

WAD is available via PyPI, so in order to install it, you simply need to run following command:

pip install wad

Usage

Use wad -h to print help text. JSON is used by default for formatting output data, but you can also use other formats with -f option.

Example usage scenario

Command: wad -u https://pypi.python.org/

Output:

{
    "https://pypi.python.org/pypi": [
        {
            "type": "cache-tools", 
            "app": "Varnish", 
            "ver": null
        }, 
        {
            "type": "web-servers", 
            "app": "Nginx", 
            "ver": "1.6.2"
        }
    ]
}

Differences between WAD and Wappalyzer

Although most of the rules matching functionality is simply a Python port of Wappalyzer's javascript implementation, there are some key differences between projects.

First of all, Wappalyzer (as an extension) runs on top of web browser, which means that the scripts on scanned site were ran, so variables and objects are created and accessible. Unfortunately, this isn't and won't be a case for WAD. WAD parses raw site content (as delivered by HTTP response), without running it in browser context. The consequences of that are simple - we can't use Wappalyzer's rules, that search for variables and objects in Javascript environment.

Secondly, the project has and will continue to naturally diverge from Wappalyzer's codebase. We don't aim to make one-to-one port of Wappalyzer project and with intention to move to BeautifulSoup as DOM inspector (instead of blindly parsing the website with regex), we won't be able to assure same behaviour in every case.

Finally, additional features added into WAD project aren't ported into Wappalyzer at the same time.

Changelog

0.4.6 (2020-09-28)

  • Write logging outputs to stderr instead of stdout

0.4.5 (2020-09-01)

  • Use latin-1 encoding for decoding page content

0.4.4 (2020-06-17)

  • Process rest of URLs if an exception is raised while scanning one

0.4.3 (2020-05-16)

  • Fix the released package, same as 0.4.2 otherwise

0.4.2 (2020-05-15)

  • Removed deprecated argument 'encoding' from json.loads

0.4.1 (2020-02-26)

  • Restored project long description on pypi

0.4 (2020-02-26)

  • Updated to latest apps.json, usability improvements

0.3.4 (2015-08-25)

  • Added additional_checks method, that allows further customization of Detector class

0.3.3 (2015-08-17)

  • Fixed bug causing crash on SSL certificate mismatch in Python >= 2.7.9

0.3.2 (2015-08-17)

  • Fixed bug causing detection of Perl if the website had Polish (.pl) top-level domain
  • Tests refactoring (duplicate code into method)

0.3.1 (2015-08-17)

  • Package should be thread-safe now
  • Minor changes to HumanReadableOutput

0.3.0 (2015-08-13)

  • Added results grouping functionality

0.2.0 (2015-08-10)

  • Multiple output formats (added Human readable text, CSV)
  • Some methods extracted from Detector's detect method.
  • Minor bugfixes