Developing Real-Time Scheduling Policy by Deep Reinforcement Learning

2021 IEEE 27th Real-Time and Embedded Technology and Applications Symposium (RTAS)(2021)

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摘要
Designing scheduling policies for multiprocessor real-time systems is challenging since the multiprocessor scheduling problem is NP-complete. The existing heuristics are customized policies that may achieve poor performance under some specific task loads. Thus, a new design pattern is needed to make the multiprocessor scheduling policies perform well under various task loads. In this paper, we inv...
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关键词
Processor scheduling,Simulation,Neural networks,Reinforcement learning,Games,Real-time systems,Task analysis
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