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Energy and Cost-Aware Workflow Scheduling in Cloud Computing Data Centers Using a Multi-objective Optimization Algorithm

机译:使用多目标优化算法在云计算数据中心中的能量和成本感知工作流程调度

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A multi-objective optimization approach is suggested here for scientific workflow task-scheduling problems in cloud computing. More frequently, scientific workflow involves a large number of tasks. It requires more resources to perform all these tasks. Such a large amount of computing power can be supported only by cloud infrastructure. To implement complex science applications, more computing energy is expended, so the use of cloud virtual machines in an energy-saving way is essential. However, even today, it is a difficult challenge to conduct a scientific workflow in an energy-aware cloud platform. The hardness of this problem increases even more with several contradictory goals. Most of the existing research does not consider the essential characteristic of cloud and significant issues, such as energy variation and throughput besides makespan and cost. Therefore, a hybridization of the Antlion Optimization (ALO) algorithm with the Grasshopper Optimization Algorithm (GOA) was proposed and used multi-objectively to solve the scheduling problems. The novelty of the proposed algorithm was enhancing the search performance by making algorithms greedy and using random numbers according to Chaos Theory on the green cloud environment. The purpose was to minimize the makes-pan, cost of performing tasks, energy consumption, and increase throughput. Work-flowSim simulator was used for implementation, and the results were compared with the SPEA2 algorithm. Experimental results indicate that based on these metrics, a proposed multi-objective optimization algorithm is better than other similar methods.
机译:这里提出了一种多目标优化方法,用于云计算中的科学工作流程任务调度问题。更频繁地,科学工作流程涉及大量任务。它需要更多资源来执行所有这些任务。只有云基础设施只能支持这种大量的计算能力。为实现复杂的科学应用程序,需要更多计算能量,因此以节能方式使用云虚拟机是必不可少的。然而,即使在今天,在能量感知云平台中开展科学工作流程是一项艰巨的挑战。这种问题的硬度增加了几个矛盾的目标。除了Makespan和成本之外,大多数现有研究都不认为云的基本特征和显着的问题,例如能量变化和吞吐量。因此,提出了具有蚱蜢优化算法(GOA)的抗杉优化(ALO)算法的杂交,并使用多象地解决调度问题。根据绿云环境的混沌理论,通过制作算法和使用随机数来提高搜索性能的新颖性。目的是最大限度地减少制作平底锅,执行任务,能耗和增加吞吐量的成本。工作流动模拟器用于实现,并将结果与​​SPEA2算法进行比较。实验结果表明,基于这些度量,提出的多目标优化算法优于其他类似方法。

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