Proceedings of the 38th ACM International Conference on Supercomputing 2024
DOI: 10.1145/3650200.3656637
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DeepHYDRA: A Hybrid Deep Learning and DBSCAN-Based Approach to Time-Series Anomaly Detection in Dynamically-Configured Systems

Franz Kevin Stehle,
Wainer Vandelli,
Felix Zahn
et al.

Abstract: Anomaly detection in distributed systems such as High-Performance Computing (HPC) clusters is vital for early fault detection, performance optimisation, security monitoring, reliability in general but also operational insights. It enables proactive measures to address issues, ensuring system reliability, resource efficiency, and protection against potential threats. Deep Neural Networks have seen successful use in detecting long-term anomalies in multidimensional data, originating for instance from industrial … Show more

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