Please use this identifier to cite or link to this item:
http://hdl.handle.net/20.500.12188/23156
Title: | Leveraging Log Instructions in Log-based Anomaly Detection | Authors: | Bogatinovski, Jasmin Madjarov, Gjorgji Nedelkoski, Sasho Cardoso, Jorge Kao, Odej |
Keywords: | anomaly detection, log data, system dependability, AIOps, deep learning | Issue Date: | 10-Jul-2022 | Publisher: | IEEE | Conference: | 2022 IEEE International Conference on Services Computing (SCC) | Abstract: | Artificial Intelligence for IT Operations (AIOps) describes the process of maintaining and operating large IT systems using diverse AI-enabled methods and tools for, e.g., anomaly detection and root cause analysis, to support the remediation, optimization, and automatic initiation of self-stabilizing IT activities. The core step of any AIOps workflow is anomaly detection, typically performed on high-volume heterogeneous data such as log messages (logs), metrics (e.g., CPU utilization), and distributed traces. In this paper, we propose a method for reliable and practical anomaly detection from system logs. It overcomes the common disadvantage of related works, i.e., the need for a large amount of manually labeled training data, by building an anomaly detection model with log instructions from the source code of 1000+ GitHub projects. The instructions from diverse systems contain rich and heterogenous information about many different normal and abnormal IT events and serve as a foundation for anomaly detection. The proposed method, named ADLILog, combines the log instructions and the data from the system of interest (target system) to learn a deep neural network model through a two-phase learning procedure. The experimental results show that ADLILog outperforms the related approaches by up to 60% on the F1 score while satisfying core non-functional requirements for industrial deployments such as unsupervised design, efficient model updates, and small model sizes. | URI: | http://hdl.handle.net/20.500.12188/23156 |
Appears in Collections: | Faculty of Computer Science and Engineering: Conference papers |
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2207.03206.pdf | 452.94 kB | Adobe PDF | View/Open |
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