idnahacks / GoodHound

Uses Sharphound, Bloodhound and Neo4j to produce an actionable list of attack paths for targeted remediation.
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active-directory activedirectory bloodhound blueteam cybersecurity neo4j purpleteam py2neo python python3 redteam

GoodHound

PyPI - Downloads

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Attackers think in graphs, defenders think in actions, management think in charts.

GoodHound operationalises Bloodhound by determining the busiest paths to high value targets and creating actionable output to prioritise remediation of attack paths.

ko-fi

I'm lucky enough to do this for a living. Any donations will be passed on to my local foodbank, animal sanctuary and animal rescue centres.

Usage

Quick Start

For a very quick start with most of the default options, make sure you have your neo4j server running and loaded with SharpHound data and run:

pip install goodhound
goodhound -p "neo4jpassword"

This will process the data in neo4j and output 3 csv reports in the current working directory.

Demo

Documentation

All documentation can be found in the wiki

Acknowledgments