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A pareto-based GA for scheduling HPC applications on distributed cloud infrastructures

机译:基于Pareto的GA,用于在分布式云基础架构上调度HPC应用程序

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Reducing energy consumption is an increasingly important issue in cloud computing, more specifically when dealing with High Performance Computing (HPC). Minimizing energy consumption can significantly reduce the amount of energy bills and then increases the provider's profit. In addition, the reduction of energy decreases greenhouse gas emissions. Therefore, many researches are carried out to develop new methods in order to consume less energy. In this paper, we present a multi-objective genetic algorithm (MO-GA) that optimizes the energy consumption, CO2 emissions and the generated profit of a geographically distributed cloud computing infrastructure. We also propose a greedy heuristic that aims to maximize the number of scheduled applications in order to compare it with the MO-GA. The two approaches have been experimented using realistic workload traces from Feitelson's PWA Parallel Workload Archive. The results show that MO-GA outperforms the greedy heuristic by a significant margin in terms of energy consumption and CO2 emissions. In addition, MO-GA is also proved to be slightly better in terms of profit while scheduling more applications.
机译:在云计算中,尤其是在处理高性能计算(HPC)时,降低能耗是一个日益重要的问题。最小化能耗可以显着减少电费,然后增加提供商的利润。另外,能源的减少减少了温室气体的排放。因此,为了消耗更少的能量,进行了许多研究以开发新的方法。在本文中,我们提出了一种多目标遗传算法(MO-GA),该算法可优化能耗,CO 2 排放以及地理分布的云计算基础架构的产生利润。我们还提出了一种贪婪的启发式方法,旨在最大化计划的申请数量,以便将其与MO-GA进行比较。这两种方法已经使用来自Feitelson的PWA并行工作负载档案库的实际工作负载轨迹进行了试验。结果表明,MO-GA在能耗和CO 2 排放方面明显优于贪婪启发式算法。此外,在安排更多应用程序的同时,MO-GA在利润方面也被证明略胜一筹。

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