Real-Time Deep Learning-Based Anomaly Detection Approach for Multivariate Data Streams with Apache Flink

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For detecting anomalies which are unexpected behaviors in complex systems, deep learning-based anomaly detection algorithms for multivariate time series have gained a lot of attention recently. While many anomaly detection algorithms have been widely proposed, there has been no work on how to perform these detection algorithms for multivariate data streams with a stream processing framework. To address this issue, we present a real-time deep learning-based anomaly detection approach for multivariate data streams with Apache Flink. We train a LSTM encoder-decoder model to reconstruct a multivariate input sequence and develop a detection algorithm that uses reconstruction error between the input sequence and the reconstructed sequence. We show that our anomaly detection algorithm can provide promising performance on a real-world dataset. Then, we develop a Flink program by implementing three operators which process and transform multivariate data streams in a specific order. The Flink program outputs anomaly detection results in real time, making system experts can easily receive notices of critical issues and resolve the issues by appropriate actions to maintain the health of the systems.
Publisher
ICWE 2021
Issue Date
2021-05-18
Language
English
Citation

1st International Workshop on Big data-driven Edge Cloud Services, BECS 2021, pp.39 - 49

ISSN
1865-0929
DOI
10.1007/978-3-030-92231-3_4
URI
http://hdl.handle.net/10203/299706
Appears in Collection
CS-Conference Papers(학술회의논문)
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