fSEAD: A Composable FPGA-based Streaming Ensemble Anomaly Detection Library

Machine learning ensembles combine multiple base models to produce a more accurate output. They can be applied to a range of machine learning problems, including anomaly detection. In this article, we investigate how to maximize the composability and scalability of an FPGA-based streaming ensemble a...

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Veröffentlicht in:ACM transactions on reconfigurable technology and systems 2023-09, Vol.16 (3), p.1-27
Hauptverfasser: Lou, Binglei, Boland, David, Leong, Philip
Format: Artikel
Sprache:eng
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Zusammenfassung:Machine learning ensembles combine multiple base models to produce a more accurate output. They can be applied to a range of machine learning problems, including anomaly detection. In this article, we investigate how to maximize the composability and scalability of an FPGA-based streaming ensemble anomaly detector (fSEAD). To achieve this, we propose a flexible computing architecture consisting of multiple partially reconfigurable regions, pblocks, which each implement anomaly detectors. Our proof-of-concept design supports three state-of-the-art anomaly detection algorithms: Loda, RS-Hash, and xStream. Each algorithm is scalable, meaning multiple instances can be placed within a pblock to improve performance. Moreover, fSEAD is implemented using High-level synthesis (HLS), meaning further custom anomaly detectors can be supported. Pblocks are interconnected via an AXI-switch, enabling them to be composed in an arbitrary fashion before combining and merging results at runtime to create an ensemble that maximizes the use of FPGA resources and accuracy. Through utilizing reconfigurable Dynamic Function eXchange (DFX), the detector can be modified at runtime to adapt to changing environmental conditions. We compare fSEAD to an equivalent central processing unit (CPU) implementation using four standard datasets, with speedups ranging from 3× to 8×.
ISSN:1936-7406
1936-7414
DOI:10.1145/3568992