Runtime Task Scheduling Using Imitation Learning for Heterogeneous Many-Core Systems

Domain-specific systems-on-chip, a class of heterogeneous many-core systems, is recognized as a key approach to narrow down the performance and energy-efficiency gap between custom hardware accelerators and programmable processors. Reaching the full potential of these architectures depends criticall...

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Veröffentlicht in:IEEE transactions on computer-aided design of integrated circuits and systems 2020-11, Vol.39 (11), p.4064-4077
Hauptverfasser: Krishnakumar, Anish, Arda, Samet E., Goksoy, A. Alper, Mandal, Sumit K., Ogras, Umit Y., Sartor, Anderson L., Marculescu, Radu
Format: Artikel
Sprache:eng
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Zusammenfassung:Domain-specific systems-on-chip, a class of heterogeneous many-core systems, is recognized as a key approach to narrow down the performance and energy-efficiency gap between custom hardware accelerators and programmable processors. Reaching the full potential of these architectures depends critically on optimally scheduling the applications to available resources at runtime. Existing optimization-based techniques cannot achieve this objective at runtime due to the combinatorial nature of the task scheduling problem. As the main theoretical contribution, this article poses scheduling as a classification problem and proposes a hierarchical imitation learning (IL)-based scheduler that learns from an Oracle to maximize the performance of multiple domain-specific applications. Extensive evaluations with six streaming applications from wireless communications and radar domains show that the proposed IL-based scheduler approximates an offline Oracle policy with more than 99% accuracy for performance- and energy-based optimization objectives. Furthermore, it achieves almost identical performance to the Oracle with a low runtime overhead and successfully adapts to new applications, many-core system configurations, and runtime variations in application characteristics.
ISSN:0278-0070
1937-4151
DOI:10.1109/TCAD.2020.3012861