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aecid-incremental-clustering

An efficient method for clustering log data.

Please install the library editdistance before continuing. The aecid-incremental-clustering was tested with editdistance 0.3.1, but should work with other versions as well.

pip3 install editdistance

To get started, just clone this repository and execute

python3 incremental_clustering.py

to run the aecid-incremental-clustering with the default input file and configurations. To change the configuration, edit the cluster_config.py file.

There are two sample configurations for Exim Mainlog and Messages log. Just copy either of the configurations by

cp configs/cluster_config_mainlog.py ./cluster_config.py

or

cp configs/cluster_config_messages.py ./cluster_config.py

and then execute the main script as before.

The script generates a text file containing a list of clusters. To view the output, use

cat data/out/clusters.txt

More information on the aecid-incremental-clustering is provided in the following paper:

Wurzenberger M., Skopik F., Landauer M., Greitbauer P., Fiedler R., Kastner W. (2017): Incremental Clustering for Semi-Supervised Anomaly Detection applied on Log Data. 12th International Conference on Availability, Reliability and Security (ARES), August 29 - September 01, 2017, Reggio Calabria, Italy. ACM. [PDF]