Scheduling jobs in computational grid using hybrid ACS and GA approach

M. M. Alobaedy, K. Ku-Mahamud
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引用次数: 18

Abstract

Metaheuristics algorithms show very good performance in solving various job scheduling problems in computational grid systems. However, due to the complexity and heterogeneous nature of resources in grid computing, stand-alone algorithm is not capable to find a good quality solution in reasonable time. This study proposes a hybrid algorithm, specifically ant colony system and genetic algorithm to solve the job scheduling problem. The high level hybridization algorithm will keep the identity of each algorithm in performing the scheduling task. The study focuses on static grid computing environment and the metrics for optimization are the makespan and flowtime. Experiment results show that the proposed algorithm outperforms other stand-alone algorithms such as ant system, genetic algorithms, and ant colony system for makespan. However, for flowtime, ant system and genetic algorithm perform better.
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基于混合ACS和GA方法的计算网格作业调度
元启发式算法在求解计算网格系统中各种作业调度问题方面表现出良好的性能。然而,由于网格计算中资源的复杂性和异构性,独立的算法无法在合理的时间内找到高质量的解。本文提出了一种混合算法,即蚁群算法和遗传算法来解决作业调度问题。高级杂交算法在执行调度任务时保持了各算法的同一性。研究的重点是静态网格计算环境,优化的指标是完工时间和流程时间。实验结果表明,该算法在makespan问题上优于蚂蚁系统、遗传算法和蚁群系统等单机算法。然而,对于流量时间,蚁群系统和遗传算法表现更好。
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