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H2GS: A hybrid heuristic-genetic scheduling algorithm for static scheduling of tasks on heterogeneous processor networks.

机译:H2GS:一种混合启发式遗传调度算法,用于异构处理器网络上的任务静态调度。

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摘要

The majority of published static scheduling algorithms are only suited to homogeneous processor networks. Little effort has been put into developing scheduling algorithms specifically for heterogeneous processors networks. It is easy to prove, using counterexamples, that the best existing heterogeneous scheduling algorithms [1, 12] generate sub-optimal schedules. Hence, there is much room for the development of better scheduling algorithms for heterogeneous processor networks.; This report presents and tests a novel hybrid scheduling algorithm (H2GS) that utilizes both deterministic and stochastic approaches to the problem of scheduling. H2GS is a two-phase algorithm. The first phase implements a heuristic algorithm (LDCP) that identifies one near-optimal schedule. This schedule is used, together with a small number of other schedules as the initial population of the second customized genetic algorithm (called GATS). The GATS algorithm proceeds to evolve even better schedules. The most important contributions of our research are: (i) the development of a new hybrid algorithm, which primes a customized genetic algorithm with a near-optimal schedule produced by a heuristic (LDCP); (ii) The hybrid algorithm succeeds in generating task schedules with completion times that are, on average, 6.2% shorter than those produced by the best existing scheduling algorithm, on the same set of test data.
机译:大多数公开的静态调度算法仅适用于同类处理器网络。专门为异构处理器网络开发调度算法的工作很少。使用反例很容易证明,现有的最佳异构调度算法[1,12]会生成次优调度。因此,为异构处理器网络开发更好的调度算法还有很大的空间。本报告介绍并测试了一种新颖的混合调度算法(H2GS),该算法利用确定性和随机方法来解决调度问题。 H2GS是一种两阶段算法。第一阶段实现一种启发式算法(LDCP),该算法可识别一个接近最佳的计划。该计划表与少量其他计划表一起用作第二个定制遗传算法(称为GATS)的初始种群。 GATS算法将继续发展更好的时间表。我们的研究最重要的贡献是:(i)新的混合算法的开发,该算法以启发式算法(LDCP)产生的接近最优的时间表启动了定制的遗传算法; (ii)在同一组测试数据上,混合算法成功生成任务计划,其完成时间平均比最佳现有计划算法产生的完成时间短6.2%。

著录项

  • 作者

    Daoud, Mohammad.;

  • 作者单位

    Concordia University (Canada).;

  • 授予单位 Concordia University (Canada).;
  • 学科 Engineering Electronics and Electrical.
  • 学位 M.A.Sc.
  • 年度 2005
  • 页码 80 p.
  • 总页数 80
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;
  • 关键词

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