首页> 外文会议>Complex, Intelligent and Software Intensive Systems, 2009. CISIS '09 >A Three-Phase Adaptive Prediction System of the Run-Time of Jobs Based on User Behaviour
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A Three-Phase Adaptive Prediction System of the Run-Time of Jobs Based on User Behaviour

机译:基于用户行为的作业运行时间的三相自适应预测系统

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This article describes an approach for predicting the run-time of jobs using a technique that works in three phases. Each one is independently adjusting to a user's behaviour in order to lead to accurate forecasts. In heterogeneous and distributed environments it is necessary to create schedules for utilizing the resources in an efficient way, but the generation of these schedules often poses a problem for a scheduler, as it has to incorporate several aspects like priorities, system load, Service Level Agreements. One possibility to support a scheduler in doing its work is to provide accurate predictions of the run-times of the submitted jobs.A large number of current techniques for run-time prediction offer statistical models - in the majority of cases linear ones - that are deployed on previously filtered data. As users have different jobs due to their field of work, and the attributes of their jobs differ, because of the different requirements they have, filtering data and choosing an appropriate method for a forecast has to cover these aspects. Motivated by this we propose an adaptive prediction system, where in each one of the phases we adjust our methodology on basis of the former behaviour of a user. This leads to a user specific clustering of data and to a flexible utilization of different prediction techniques in order to create a user-centred prediction model.
机译:本文介绍了一种使用可在三个阶段工作的技术来预测作业运行时间的方法。每个人都独立地调整用户的行为,以得出准确的预测。在异构和分布式环境中,有必要创建一种高效利用资源的时间表,但是这些时间表的生成通常给调度程序带来麻烦,因为它必须包含优先级,系统负载,服务水平协议等多个方面。支持调度程序执行其工作的一种可能性是提供对所提交作业的运行时间的准确预测。许多当前的运行时预测技术提供了统计模型-在大多数情况下为线性模型-部署在先前过滤的数据上。由于用户因其工作领域而具有不同的工作,并且由于其具有不同的要求而导致其工作的属性也不同,因此过滤数据并选择适当的预测方法必须涵盖这些方面。因此,我们提出了一种自适应预测系统,其中在每个阶段中,我们都会根据用户以前的行为来调整我们的方法。这导致用户特定的数据聚类,并灵活利用不同的预测技术以创建以用户为中心的预测模型。

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