An efficient energy saving task consolidation algorithm for cloud computing systems

S. K. Panda, P. K. Jana
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引用次数: 23

Abstract

Task consolidation is a process of maximizing resource utilization in a cloud system. However, maximum usage of resources does not necessarily imply that there will be proper use of energy as some resources which are sitting idle, also consume considerable amount of energy. Recent studies show that energy consumption due to idle resources is approximately 1 to 20%. So, the idle resources are assigned with some tasks to utilize the idle period, which in turn reduces the overall energy consumption of the resources. Note that higher resource utilization merely leads to high energy consumption. So, the tasks are likely to be assigned to all the resources for the proper use of energy. In this paper, we propose an energy saving task consolidation (ESTC) which minimizes the energy consumption by utilizing the idle period of the resources in a cloud environment. ESTC achieves it by assigning few tasks to all available resources to overcome the idleness of the resources. In addition to this, it calculates the energy consumption on arrival of a task to make the scheduling assessment. We perform extensive experiments to measure the performance of ESTC and we compare it with the recent energy-aware task consolidation (ETC) algorithm. The results show that the proposed algorithm outperforms ETC in terms of energy consumption and the total number of task completion.
一种高效的云计算系统节能任务整合算法
任务整合是云系统中最大限度地利用资源的过程。然而,最大限度地利用资源并不一定意味着适当地利用能源,因为一些闲置的资源也消耗了相当多的能源。最近的研究表明,由于闲置资源造成的能源消耗约占1 - 20%。因此,空闲资源被分配了一些任务来利用空闲时间,从而降低了资源的总体能耗。请注意,更高的资源利用率只会导致更高的能源消耗。因此,任务很可能被分配给所有的资源,以正确使用能源。在本文中,我们提出了一种节能任务整合(ESTC),它通过利用云环境中资源的空闲期来最小化能源消耗。ESTC通过对所有可用资源分配很少的任务来克服资源的闲置性。此外,它还计算任务到达时的能耗,以进行调度评估。我们进行了大量的实验来衡量ESTC的性能,并将其与最近的能量感知任务巩固(ETC)算法进行了比较。结果表明,该算法在能耗和任务完成总数方面优于ETC算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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