Scheduling policy design for autonomic systems

Int. J. Auton. Adapt. Commun. Syst.(2009)

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摘要
Scheduling the execution of multiple concurrent tasks on shared resources such as CPUs and network links is essential to ensuring the reliable operation of many autonomic systems. Well-known techniques such as rate-monotonic scheduling can offer rigorous timing and preemption guarantees, but only under assumptions (i.e. a fixed set of tasks with well-known execution times and invocation rates) that do not hold in many autonomic systems. New hierarchical scheduling techniques are better suited to enforce the more flexible execution constraints and enforcement mechanisms that are required for autonomic systems, but a rigorous and efficient foundation for verifying and enforcing concurrency and timing guarantees is still needed for these approaches. This paper summarises our previous work on addressing these challenges, on Markov decision process-based scheduling policy design and on wrapping repeated structure of the scheduling state spaces involved into a more efficient model, and presents a new algorithm called expanding state policy iteration (ESPI), that allows us to compute the optimal policy for a wrapped state model.
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关键词
scheduling state space,rate-monotonic scheduling,scheduling policy design,state policy iteration,policy design,state space reduction.,optimal policy,autonomic systems,scheduling,flexible execution constraint,state model,well-known execution time,policy iteration,new hierarchical scheduling technique,autonomic system,reliability,autonomic computing,rate monotonic scheduling,state space,markov decision process
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