自挂起任务链的延迟分析

Tomasz Kloda, Jiyang Chen, A. Bertout, L. Sha, M. Caccamo
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引用次数: 1

摘要

许多网络物理系统正在将计算量大的程序卸载到硬件加速器(例如GPU和TPU)以减少执行时间。这些应用程序将在将数据卸载到加速器和获取返回结果之间自挂起。先前的研究表明,自挂起任务可能会导致调度异常,但没有人研究过任务间的通信。本文旨在研究具有周期性激活和异步消息传递的自挂起任务数据链延迟问题。我们首先提出了悬浮引起延迟的原因和最坏情况延迟分析。然后,我们提出了一个利用硬件协处理器来减少数据链延迟和可调度性分析的规则。仿真结果表明,该策略在保持系统可调度性的同时,提高了系统的总体延迟。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Latency analysis of self-suspending task chains
Many cyber-physical systems are offloading computation-heavy programs to hardware accelerators (e.g., GPU and TPU) to reduce execution time. These applications will self-suspend between offloading data to the accelerators and obtaining the returned results. Previous efforts have shown that self-suspending tasks can cause scheduling anomalies, but none has examined inter-task communication. This paper aims to explore self-suspending tasks' data chain latency with periodic activation and asynchronous message passing. We first present the cause for suspension-induced delays and worst-case latency analysis. We then propose a rule for utilizing the hardware co-processors to reduce data chain latency and schedulability analysis. Simulation results show that the proposed strategy can improve overall latency while preserving system schedulability.
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