Performance Improvement of Genetic Algorithms by Adaptive Grid Workflows

B. Jakimovski, Dragan Sahpaski, G. Velinov
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引用次数: 2

Abstract

In this paper we present improvement of the performance of Grid Direct Acyclic Graph (DAG) workflow genetic algorithm by harnessing the power of High Level Petri-Nets workflow model. Genetic Algorithms are very powerful optimization technique that is easily parallelized using different approaches which makes it ideal for the Grid. The High Level Petri-Net workflow model greatly outperforms currently available DAG workflow model available in gLite Grid middleware. Using the flexibility of the High Level Petri-Net workflows we have designed an adaptive workflow that overcomes the heterogeneity and unpredictability of the Grid infrastructure, giving users better and more stable execution times than formerly used DAG workflows. The experimental results obtained by Genetic Algorithm optimization of performance of the Data Warehouse design have shown advantages of the new approach by shortening the optimization time up to 50%for the same CPU time utilization. Another advantage is the increased stability of the time variance of the estimated execution time to approximately 30 minutes for runs on different Grid loads.
基于自适应网格工作流的遗传算法性能改进
本文利用高阶Petri-Nets工作流模型的强大功能,改进了网格直接无环图(DAG)工作流遗传算法的性能。遗传算法是一种非常强大的优化技术,可以使用不同的方法轻松地并行化,这使得它非常适合网格。高级Petri-Net工作流模型大大优于gLite Grid中间件中现有的DAG工作流模型。利用高级Petri-Net工作流的灵活性,我们设计了一个自适应工作流,克服了网格基础设施的异构性和不可预测性,为用户提供了比以前使用的DAG工作流更好、更稳定的执行时间。采用遗传算法优化数据仓库设计性能的实验结果表明,在相同CPU时间利用率的情况下,新方法的优化时间缩短了50%。另一个优点是,在不同的Grid负载上运行时,将估计执行时间的时间方差的稳定性提高到大约30分钟。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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