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Job Scheduling in Cloud Computing Using a Modified Harris Hawks Optimization and Simulated Annealing Algorithm

机译:云计算中的工作调度使用修改的Harris Hawks优化和模拟退火算法

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In recent years, cloud computing technology has attracted extensive attention from both academia and industry. The popularity of cloud computing was originated from its ability to deliver global IT services such as core infrastructure, platforms, and applications to cloud customers over the web. Furthermore, it promises on-demand services with new forms of the pricing package. However, cloud job scheduling is still NP-complete and became more complicated due to some factors such as resource dynamicity and on-demand consumer application requirements. To fill this gap, this paper presents a modified Harris hawks optimization (HHO) algorithm based on the simulated annealing (SA) for scheduling jobs in the cloud environment. In the proposed HHOSA approach, SA is employed as a local search algorithm to improve the rate of convergence and quality of solution generated by the standard HHO algorithm. The performance of the HHOSA method is compared with that of state-of-the-art job scheduling algorithms, by having them all implemented on the CloudSim toolkit. Both standard and synthetic workloads are employed to analyze the performance of the proposed HHOSA algorithm. The obtained results demonstrate that HHOSA can achieve significant reductions in makespan of the job scheduling problem as compared to the standard HHO and other existing scheduling algorithms. Moreover, it converges faster when the search space becomes larger which makes it appropriate for large-scale scheduling problems.
机译:近年来,云计算技术引起了学术界和工业的广泛关注。云计算的普及源于其将全球IT服务提供核心基础架构,平台和应用程序的全球IT服务的能力,以云客户在Web上云。此外,它承诺具有新形式的定价包的需求服务。然而,云作业调度仍然是NP-Complete,并且由于资源动态和按需消费者应用要求等一些因素而变得更加复杂。为了填补这一差距,本文提出了一种基于模拟退火(SA)的修改后的Harris Hawks优化(HHO)算法,用于在云环境中调度作业。在提议的Hhosa方法中,SA被用作本地搜索算法,以提高标准HHO算法产生的溶液的收敛速度和质量。将Hhosa方法的性能与最先进的作业调度算法进行比较,使它们都在CloudSIM工具包上实现。标准和合成工作负载都用于分析所提出的HHOSA算法的性能。获得的结果表明,与标准的HHO和其他现有调度算法相比,Hhosa可以达到工作调度问题的Mapspan的显着减少。此外,当搜索空间变大时,它会收敛更快,这使得适合大规模调度问题。

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