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An Execution Fingerprint Dictionary for HPC Application Recognition
ConferencePaper (Artikel, die in Tagungsbänden erschienen sind)
 
ID 4631199
Author(s) Jakobsche, Thomas; Lachiche, Nicolas; Cavelan, Aurélien; Ciorba, Florina M.
Author(s) at UniBasel Ciorba, Florina M.
Jakobsche, Thomas
Year 2021
Title An Execution Fingerprint Dictionary for HPC Application Recognition
Book title (Conference Proceedings) 2021 IEEE International Conference on Cluster Computing (CLUSTER 2021)
Place of Conference Portland, OR, USA
Year of Conference 2021
Publisher IEEE COMPUTER SOC
Place of Publication LOS ALAMITOS, CA
Pages 604-608
ISSN/ISBN 978-1-7281-9666-4
Keywords HPC, application recognition, data reduction, system monitoring
Abstract

Applications running on HPC systems waste time and energy if they: (a) use resources inefficiently, (b) deviate from allocation purpose (e.g. cryptocurrency mining), or (c) encounter errors and failures. It is important to know which applications are running on the system, how they use the system, and whether they have been executed before. To recognize known applications during execution on a noisy system, we draw inspiration from the way Shazam recognizes known songs playing in a crowded bar. Our contribution is an Execution Fingerprint Dictionary (EFD) that stores execution fingerprints of system metrics (keys) linked to application and input size information (values) as key-value pairs for application recognition. Related work often relies on extensive system monitoring (many system metrics collected over large time windows) and employs machine learning methods to identify applications. Our solution only uses the first 2 minutes and a single system metric to achieve F-scores above 95 percent, providing comparable results to related work but with a fraction of the necessary data and a straightforward mechanism of recognition.

Series title IEEE International Conference on Cluster Computing
Digital Object Identifier DOI 10.1109/Cluster48925.2021.00092
ISI-Number WOS:000728391000055
Document type (ISI) Proceedings Paper
   

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