Optimizing Anomaly Detection in Large-scale Logs
Conference proceedings article
Authors/Editors
Strategic Research Themes
Publication Details
Author list: Arnatchai Techaviseschai, Vasco Chibante Barroso, Sansiri Tarnpradab, Phond Phunchongharn
Publication year: 2023
Start page: 18
End page: 23
Number of pages: 6
URL: https://ieeexplore.ieee.org/document/10392401/
Abstract
The ALICE detector at the CERN LHC is a large and complex system that has employed system logging to keep track of progress and detect any abnormal activity that may occur. In this study, we propose a complete log-anomaly detection framework to automatically detect anomalies, with an emphasis on examining its scalability when applied to large datasets as those typical of large high-energy physics experiments. Furthermore, we investigate different factors that may have an impact on model performance through extensive tests on real-world datasets, HDFS, and CERN Infologger. The insights gained from this study will enhance the safety, efficiency, and reliability of infrastructure operations at the ALICE facility.
Keywords
ALICE, Anomaly Detection, CERN, Convolutional neural network, Machine Learning, Monitoring System