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logdata-anomaly-miner Build Status DeepSource

This tool parses log data and allows to define analysis pipelines for anomaly detection. It was designed to run the analysis with limited resources and lowest possible permissions to make it suitable for production server use.

AECID Demo – Anomaly Detection with aminer and Reporting to IBM QRadar

Requirements

In order to install logdata-anomaly-miner a Linux system with python >= 3.6 is required. Debian-based distributions are currently recommended.

See requirements.txt for further module dependencies

Installation

Debian

There are Debian packages for logdata-anomaly-miner in the official Debian/Ubuntu repositories.

apt-get update && apt-get install logdata-anomaly-miner

From source

The following command will install the latest stable release:

cd $HOME
wget https://raw.githubusercontent.com/ait-aecid/logdata-anomaly-miner/main/scripts/aminer_install.sh
chmod +x aminer_install.sh
./aminer_install.sh

Docker

For installation with Docker see: Deployment with Docker

Getting started

Here are some resources to read in order to get started with configurations:

Publications

Publications and talks:

A complete list of publications can be found at https://aecid.ait.ac.at/further-information/.

Contribution

We're happily taking patches and other contributions. Please see the following links for how to get started:

Bugs

If you encounter any bugs, please create an issue on Github.

Security

If you discover any security-related issues read the SECURITY.md first and report the issues.

License

GPL-3.0

Financial Support

This project received financial support through the research projects CAIS (832345), CIIS (840842), and CISA (850199) in course of the Austrian KIRAS security research programme, the research projects synERGY (855457) and DECEPT (873980) in course of the ICT of the future programme of the Austrian Research Promotion Agency (FFG), the research project PANDORA (SI2.835928) in course of the European Defence Industrial Development Programme (EDIDP), as well as the research projects ECOSSIAN (607577) and GUARD (833456) in course of the European Seventh Framework Programme (FP7) and Horizon 2020.