Authors
Jasmin Bogatinovski, Harold Ott, Alexander Acker, Sasho Nedelkoski, Odej Kao
Publication date
2021/5/29
Conference
2021 IEEE/ACM International Workshop on Cloud Intelligence (CloudIntelligence)
Pages
19-24
Publisher
IEEE
Description
Anomalies or failures in large computer systems, such as the cloud, have an impact on a large number of users that communicate, compute, and store information. Therefore, timely and accurate anomaly detection is necessary for reliability, security, safe operation, and mitigation of losses in these increasingly important systems. Recently, the evolution of the software industry opens up several problems that need to be tackled including (1) addressing the software evolution due software upgrades, and (2) solving the cold-start problem, where data from the system of interest is not available. In this paper, we propose a framework for anomaly detection in log data, as a major troubleshooting source of system information. To that end, we utilize pre-trained general-purpose language models to preserve the semantics of log messages and map them into log vector embeddings. The key idea is that these representations …
Total citations
20222023202411113
Scholar articles
H Ott, J Bogatinovski, A Acker, S Nedelkoski, O Kao - 2021 IEEE/ACM international workshop on cloud …, 2021