OWASP Hatkit Datafiddler Project

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The Hatkit Datafiddler is a tool for performing analysis of captured http traffic. It currently consists of two main views, one table-based and one tree-based. These views allow the user to study different aspects of the http traffic, with very high degree of configurability. The tool is also meant to be a framework which can utilize existing tools analyze traffic.

It is written in Python with a Qt-based UI and uses a MongoDB database. It has a sister-project, which is the Hatkit Proxy

Getting started

First of all, visit BitBucket download page to check which is the latest release. Then get it:

$ wget https://bitbucket.org/holiman/hatkit-datafiddler/downloads/hatkit_datafiddler-0.5.0.zip
$ unzip hatkit_datafiddler-0.5.0.zip 
$ cd hatkit_datafiddler-0.5.0/
$ python datafiddler.py

Datafiddler will tell you about any missing dependencies with something like this:

Unfortunately, you have the following missing dependencies:
 * python-qt4 : Python bindings for Qt4
 * pymongo : Python drivers for MongoDB

Fetch them via your favourite package manager (on *nix systems. Windows is currently not endorsed). Naturally, you need a MongoDB also. MongoDB is available either from the package repositories or from MongoDB download section.

If all goes well, you should be met by this screen, where you can choose which session to use. Sessions are really just databases, but Datafiddler only lists the databases in your MongoDB which contain a collection called conversations.


Table view

An example of how the table view window can look
Via Settings, you can access the table definitions
Another example, using a raw python expression in the definition for column 3 and "Python" as column title
The tabledata settings also has filters
The filters can be arbitrary javascript expressions

The table view displays data in a 1:1 mapping, where every line in a table corresponds to one 'object' in the database. One 'object' contains the request, the response and some extra data. What is special about the Datafiddler is that what you see here is fully customizable.


If you select Settings, you will be met by the settings-window. This window gives you tools to define what is displayed in the table view to suit your current task.

The section below is pretty technical. You don't have to know python or javascript to use this tool, Datafiddler comes with predefined expressions and views that you can use. When you learn the ropes a bit, you can just make modifications to these and you should be fine.

On the left side, there are variables. For each object which is fetched from the database, these expressions determines exactly what parts are fetched and places these parts, into python variables with the names v0 and onward. On the right side, there are the actual definitions of the columns that are shown in the table. These column definitions are python expressions which are evaluated at display-time, and are therefore able to either display a variable directly or perform operations on them and display the result.

For example, a database object stored by Hatkit Proxy always contain these fields:


(For more details about storage format, see OWASP_Hatkit_Proxy_Project#tab=Storage Storage If the request part of a database object is loaded into v0, it means that v0 will contain python dictionary containing everything that concerns the request. E.g. The python expression v0['method'] will be the request verb (GET/POST/FOO),while the expression v0['headers'] will be another python dictionary containing the request headers.

This means that this object introspection can be performed either inside the database - which is using javascript, or in the application itself, using python. Example:

v0 = request.headers.Host ==> v0 : "foobar.com"
v0 = request ==> v0['headers']['Host'] : "foobar.com"

Worth mentioning though, is that accessing a non-existant attribute (or member) in javascripts returns undefined:

var x = {};
alert(x.foo); // alerts "undefined"
alert(x.foo.bar); // yields exception

While in python, a similar operation yields exception sooner:

>>> x={}
>>> x["foo"]
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
KeyError: 'foo'

Also, it makes sense to fetch only what is required for the kind of view that you are interested in. If you are analysing session tokens, it is less resource intensive on your machine not to fetch the html content of each response.

What to show: Database Filtering

See the database filtering tab.

How to show it






Database Filtering

The table view (and the upcoming third-party view) supports database filtering. A database filter is a set of expressions which are evaluated in the database, and determines which items are returned in the result of a given query. Note: This is much like the WHERE-part of an SQL statement (on steroids).

Native filters

The filter contains two tabs. One is for 'native' expressions, where the syntax is a standard javascript object notation. Example below: a filter that returns only pages where (url-)parameters were present in the request.


Some example operators which can be used:

  • $exists
    • Check for existence (or lack thereof) of a field.
  • $ne
    • Use $ne for "not equals".
  • $in / $nin
    • The $in operator is analogous to the SQL IN modifier, allowing you to specify an array of possible matches.
  • $or / $nor
    • The $or operator lets you use a boolean or expression to do queries. You give $or a list of expressions, any of which can satisfy the query.

It is also possible to use regular expression in the filters. For further information about how filtering works, and examples of operators which may be used, see the MongoDB documentation

Javascript filters

In the other tab, you can enter javascript expressions (a V8 engine is embedded inside the database). Simply enter a function which returns true if the object should be returned, false otherwise. Example below: a filter which only returns items where one of the request (url-) parameters were present in the html response - i.e reflected content.


You can click 'Test' to see if the filter works. Javascript errors should be visible in the mongodb console, and the number of matches should be shown in the text pane:


If you write a good filter, you can click "Save as" so you don't have to retype it next time. A good set of standard filters for different purposes is planned for inclusion at a later stage. In the meantime, if you write any handy filters you are encouraged to post them to the datafiddler mailing list.


If you don't already use Mercurial, first do

sudo apt-get install hg

Then fetch the code:

hg clone https://owasp.org/index.php/OWASP_Hatkit_Datafiddler_Project

After that, it's smooth sailing. If you have something to commit, you can create a bitbucket-account create a 'fork' there, where you can publish changes which can then be pulled into the main repository.

Project About

What does this OWASP project offer you?
What releases are available for this project?
what is this project?
Name: OWASP Hatkit Datafiddler Project (home page)
  • The Datafiddler is a tool for performing advanced analysis of http traffic. It currently consists of two main views, one table-based and one tree-based. These views allow the user to study different aspects of the http traffic, with very high degree of configurability. The tool is also meant to be a framework which can utilize existing tools to analyze traffic post mortem (or real-time).
  • Built in Python/Qt + MongoDB.
License: GNU General Public License v3
who is working on this project?
Project Leader(s):
how can you learn more?
Project Pamphlet: Not Yet Created
Project Presentation: View
Mailing list: Mailing List Archives
Project Roadmap: View
Main links:
Key Contacts
  • Contact the GPC to report a problem or concern about this project or to update information.
current release
Hatkit Fiddler v 0.5.0 - April 9 2011 - (download)
Release description:
  • This tool allows you to analyze data which has been catpured into a MongoDB. You can view the data in table-mode (with dynamically evaluated column-definitions which can reach into html, transform values etc), aggregate-mode (performs advanced data aggregation, showing different characteristics on the data depeneding on how you define (or use the pre-defined) javascript aggregators, which are sent right into MongoDB). It also has a third-party-app replay functionality, to let w3af or ratproxy do their thing and analyze the data for you.
  • Requirements: Python, Python-qt bindings, Qt4, MongoDB, Python Mongodb drivers.
Rating: Yellow button.JPG Not Reviewed - Assessment Details
last reviewed release
Not Yet Reviewed

other releases