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Symbiotic Organism Search optimization based task scheduling in cloud computing environment

机译:云计算环境下基于共生生物搜索优化的任务调度

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Efficient task scheduling is one of the major steps for effectively harnessing the potential of cloud computing. In cloud computing, a number of tasks may need to be scheduled on different virtual machines in order to minimize makespan and increase system utilization. Task scheduling problem is NP-complete, hence finding an exact solution is intractable especially for large task sizes. This paper presents a Discrete Symbiotic Organism Search (DSOS) algorithm for optimal scheduling of tasks on cloud resources. Symbiotic Organism Search (SOS) is a newly developed metaheuristic optimization technique for solving numerical optimization problems. SOS mimics the symbiotic relationships (mutualism, commen-salism, and parasitism) exhibited by organisms in an ecosystem. Simulation results revealed that DSOS outperforms Particle Swarm Optimization (PSO) which is one of the most popular heuristic optimization techniques used for task scheduling problems. DSOS converges faster when the search gets larger which makes it suitable for large-scale scheduling problems. Analysis of the proposed method conducted using t-test showed that DSOS performance is significantly better than that of PSO particularly for large search space.
机译:高效的任务调度是有效利用云计算潜力的主要步骤之一。在云计算中,可能需要在不同的虚拟机上安排许多任务,以最大程度地缩短制造周期并提高系统利用率。任务调度问题是NP完全的,因此特别是对于大任务规模,找到精确的解决方案是很难的。本文提出了一种离散共生生物搜索(DSOS)算法,用于在云资源上优化任务调度。共生有机体搜索(SOS)是一种新开发的元启发式优化技术,用于解决数值优化问题。 SOS模仿了生态系统中生物体表现出的共生关系(互惠,共鸣和寄生)。仿真结果表明,DSOS优于粒子群优化(PSO),后者是用于任务调度问题的最流行的启发式优化技术之一。当搜索范围变大时,DSOS会收敛得更快,这使其适合于大规模调度问题。使用t检验对提出的方法进行的分析表明,DSOS性能明显优于PSO,特别是对于较大的搜索空间。

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