首页> 外文会议>International Workshop on Job Scheduling Strategies for Parallel Processing(JSSPP 2005); 20050619; Cambridge,MA(US) >ScoPred—Scalable User-Directed Performance Prediction Using Complexity Modeling and Historical Data
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ScoPred—Scalable User-Directed Performance Prediction Using Complexity Modeling and Historical Data

机译:ScoPred-使用复杂性建模和历史数据的可扩展的用户导向性能预测

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Using historical information to predict future runs of parallel jobs has shown to be valuable in job scheduling. Trends toward more flexible job-scheduling techniques such as adaptive resource allocation, and toward the expansion of scheduling to grids, make runtime predictions even more important. We present a technique of employing both a user's knowledge of his/her parallel application and historical application-run data, synthesizing them to derive accurate and scalable predictions for future runs. These scalable predictions apply to runtime characteristics for different numbers of nodes (processor scalability) and different problem sizes (problem-size scalability). We employ multiple linear regression and show that for decently accurate complexity models, good prediction accuracy can be obtained.
机译:使用历史信息预测并行作业的未来运行已显示出对作业调度的价值。诸如自适应资源分配等更灵活的作业调度技术以及将调度扩展到网格的趋势使得运行时预测变得更加重要。我们提出一种利用用户对他/她的并行应用程序的知识和历史应用程序运行数据的技术,将它们合成以得出准确的和可扩展的未来运行预测。这些可伸缩的预测适用于不同数量的节点(处理器可伸缩性)和不同问题大小(问题大小可伸缩性)的运行时特性。我们采用多元线性回归,并表明对于相当准确的复杂性模型,可以获得良好的预测精度。

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