On multi-processor speed scaling with migration

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摘要

We investigate a very basic problem in dynamic speed scaling where a sequence of jobs, each specified by an arrival time, a deadline and a processing volume, has to be processed so as to minimize energy consumption. We study multi-processor environments with m parallel variable-speed processors assuming that job migration is allowed, i.e. whenever a job is preempted it may be moved to a different processor. We first study the offline problem and show that optimal schedules can be computed efficiently in polynomial time, given any convex non-decreasing power function. In contrast to a previously known strategy, our algorithm does not resort to linear programming. For the online problem, we extend two algorithms Optimal Available and Average Rate proposed by Yao et al. [15] for the single processor setting. Here we concentrate on power functions P(s)=sα, where s is the processor speed and α>1 is a constant.

论文关键词:Energy efficiency,Offline algorithm,Online algorithm,Flow computation,Competitive analysis

论文评审过程:Received 8 March 2012, Accepted 31 January 2015, Available online 30 March 2015, Version of Record 10 June 2015.

论文官网地址:https://doi.org/10.1016/j.jcss.2015.03.001