Deadline constrained scheduling of scientific workflows on cloud using hybrid genetic algorithm

Gursleen Kaur, Mala Kalra
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引用次数: 19

Abstract

Workflows have simplified the execution of complex large scale scientific applications. The cloud acts as an ideal paradigm for executing them but with many open challenges that need to be addressed for an effective workflow scheduling. Several algorithms have been proposed for workflow scheduling, but most of them fail to incorporate the key features of cloud like heterogeneous resources, pay-per-usage model, and elasticity along with the Quality of service (QoS) requirements. This paper proposes a hybrid genetic algorithm which uses the PEFT generated schedule as a seed with the aim to minimize cost while keeping execution time below the given deadline. A good seed helps to accelerate the process of obtaining an optimal solution. The algorithm is simulated on WorkflowSim and is evaluated using various scientific realistic workflows of different sizes. The experimental results validate that our approach performs better than various state of the art algorithms.
基于混合遗传算法的云上科学工作流限期调度
工作流简化了复杂的大规模科学应用程序的执行。云是执行工作流的理想范例,但要实现有效的工作流调度,还需要解决许多尚未解决的挑战。已经提出了几种用于工作流调度的算法,但大多数算法都没有结合云的关键特性,如异构资源、按使用付费模型、弹性以及服务质量(QoS)要求。本文提出了一种以PEFT生成的调度作为种子的混合遗传算法,其目的是在保证执行时间低于给定期限的情况下,使成本最小化。好的种子有助于加速获得最优解的过程。该算法在WorkflowSim上进行了仿真,并使用各种不同规模的科学现实工作流进行了评估。实验结果验证了我们的方法比各种先进的算法性能更好。
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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