Abstract
The improvement in the reliability, availability, and maintenance of the IT infrastructure components is paramount to ensure uninterrupted services in large-scale IT Infrastructures. The massive system logs generated by infrastructures have proved to be advantageous to pursue the runtime circumstances and behavior of the system. Existing literature has log-based failure detection techniques carrying semantic analysis but on limited log features, reflecting ineffectiveness in anomaly detection for unstable and unseen log records. We have proposed in this paper a semantic log analysis model with three log features to apprehend the gist of the log message. BERT pre-trained model is employed to adapt the feature embedding. The generated numerical vectors are further furnished to train an attention-based OLSTM (Optimized Long Short-Term Memory Networks) classifier to detect failures in diverse infrastructures. The proposed model is evaluated on five different infrastructures: Apache from a server application, OpenStack from the Distributed Systems, Windows from the Operating System, BGL from a Supercomputer, and Android from the Mobile System. The findings illustrate that the proposed system delivers improved and stable results, considering the varied IT infrastructures.
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CITATION STYLE
Bhanage, D. A., Pawar, A. V., Kotecha, K., & Abraham, A. (2023). Failure Detection Using Semantic Analysis and Attention-Based Classifier Model for IT Infrastructure Log Data. IEEE Access, 11, 108178–108197. https://doi.org/10.1109/ACCESS.2023.3319438
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