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首页> 外文期刊>Journal of Grid Computing >Strategies for Rescheduling Tightly-Coupled Parallel Applications in Multi-Cluster Grids
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Strategies for Rescheduling Tightly-Coupled Parallel Applications in Multi-Cluster Grids

机译:在多集群网格中重新安排紧密耦合并行应用程序的策略

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摘要

As computational Grids are increasingly used for executing long running multi-phase parallel applications, it is important to develop efficient rescheduling frameworks that adapt application execution in response to resource and application dynamics. In this paper, three strategies or algorithms have been developed for deciding when and where to reschedule parallel applications that execute on multi-cluster Grids. The algorithms derive rescheduling plans that consist of potential points in application execution for rescheduling and schedules of resources for application execution between two consecutive rescheduling points. Using large number of simulations, it is shown that the rescheduling plans developed by the algorithms can lead to large decrease in application execution times when compared to executions without rescheduling on dynamic Grid resources. The rescheduling plans generated by the algorithms are also shown to be competitive when compared to the near-optimal plans generated by brute-force methods. Of the algorithms, genetic algorithm yielded the most efficient rescheduling plans with 9–12% smaller average execution times than the other algorithms.
机译:随着计算网格越来越多地用于执行长时间运行的多阶段并行应用程序,开发有效的重新计划框架以响应资源和应用程序动态来适应应用程序执行非常重要。在本文中,已经开发了三种策略或算法,用于确定何时和何处重新安排在多集群网格上执行的并行应用程序。该算法推导了重新调度计划,该计划包括在应用程序执行中可能进行重新调度的点以及在两个连续的重新调度点之间进行应用程序执行的资源的调度。使用大量仿真结果表明,与不重新安排动态Grid资源的执行相比,算法制定的重新安排计划可以大大减少应用程序的执行时间。与蛮力法生成的近乎最优的计划相比,算法生成的重新计划也显示出竞争优势。在这些算法中,遗传算法产生了最有效的重新计划计划,与其他算法相比,平均执行时间缩短了9–12%。

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