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Mining performance data for metascheduling decision support in the Grid

机译:挖掘性能数据以用于Grid中的元调度决策支持

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Metaschedulers in the Grid need dynamic information to support their scheduling decisions. Job response time on computing resources, for instance, is such a performance metric. In this paper, we propose an Instance Based Learning technique to predict response times by mining historical performance data. The novelty of our approach is to introduce policy attributes in representing and comparing resource states, which are defined as the pools of running and queued jobs on the resources at the time of making predictions. The policy attributes reflect the local scheduling policies and they can be automatically discovered using genetic search. An extensive empirical evaluation is conducted to validate our technique using real workload traces, which are collected from the NIKHEF production cluster on the LHC Computing Grid and Blue Horizon in the San Diego Supercomputer Center (SDSC). The experimental results show that acceptable prediction accuracy can be achieved, where the normalized average prediction errors for response times are ranging from 0.57 to 0.79. (C) 2006 Elsevier B.V. All rights reserved.
机译:网格中的元调度程序需要动态信息来支持其调度决策。例如,对计算资源的作业响应时间就是这种性能指标。在本文中,我们提出了一种基于实例的学习技术来通过挖掘历史性能数据来预测响应时间。我们方法的新颖之处在于在表示和比较资源状态时引入了策略属性,这些属性定义为在进行预测时资源上正在运行和排队的作业的池。策略属性反映了本地调度策略,可以使用遗传搜索自动发现它们。进行了广泛的经验评估,以使用真实的工作负载跟踪来验证我们的技术,该工作负载跟踪是从LHC计算网格上的NIKHEF生产集群和圣地亚哥超级计算机中心(SDSC)的Blue Horizo​​n中收集的。实验结果表明,在响应时间的归一化平均预测误差为0.57至0.79的范围内,可以达到可接受的预测精度。 (C)2006 Elsevier B.V.保留所有权利。

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