网格中工作流活动性能建模与预测的混合智能方法

Rubing Duan, F. Nadeem, Jie Wang, Yun Zhang, R. Prodan, T. Fahringer
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引用次数: 57

摘要

网格调度器需要单独的活动性能预测来映射不同网格站点上的工作流活动。由于现有的预测器无法有效地对网格资源的动态性和异构性进行建模,或者由于问题大小和运行时参数的差异,导致不准确的预测妨碍了调度系统的有效性。为了解决这一缺陷,我们提出了一种混合贝叶斯神经网络方法来动态建模和预测实际工作流应用中活动的执行时间。贝叶斯网络用于对影响性能的不同因素的活动性能概率分布的高级表示。贝叶斯网络动态选择重要属性,并将其输入径向基函数神经网络进行进一步预测。我们的方法对任何类型的科学应用都是通用的,并且可以灵活地导入专家知识以进一步提高准确性。实验结果表明了该方法的有效性。
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A Hybrid Intelligent Method for Performance Modeling and Prediction of Workflow Activities in Grids
Grid schedulers require individual activity performance predictions to map workflow activities on different Grid sites. The effectiveness of the scheduling systems is hampered by inaccurate predictions due to the inability of existing predictors to effectively model the dynamic and heterogeneous nature of Grid resources, or the wide range of problem sizes and runtime arguments. To address this deficiency, we propose a hybrid Bayesian-neural network approach to dynamically model and predict the execution time of activities in real workflow applications. Bayesian network is used for a high-level representation of activities performance probability distribution against different factors affecting the performance. The important attributes are dynamically selected by the Bayesian network and fed into a radial basis function neural network to make further predictions. Our approach is generic to any type of scientific applications, and flexible to import expert knowledge to further improve accuracies. Experimental results for activities from three realworld workflow applications are presented to show effectivenessof our approach.
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