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Towards Energy-Aware Resource Scheduling to Maximize Reliability in Cloud Computing Systems

机译:努力实现能源意识的资源调度,以最大限度地提高云计算系统的可靠性

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Cloud computing has become increasingly popular due to deployment of cloud solutions that will enable enterprises to cost reduction and more operational flexibility. Reliability is a key metric for assessing performance in such systems. Fault tolerance methods are extensively used to enhance reliability in Cloud Computing Systems (CCS). However, these methods impose extra hardware and/or software cost. Proper resource allocation is an alternative approach which can significantly improve system reliability without any extra overhead. On the other hand, contemplating reliability irrespective of energy consumption and Quality of Service (QoS) requirements is not desirable in CCSs. In this paper, an analytical model to analyze system reliability besides energy consumption and QoS requirements is introduced. Based on the proposed model, a new online resource allocation algorithm to find the right compromise between system reliability and energy consumption while satisfying QoS requirements is suggested. The algorithm is a new swarm intelligence technique based on imperialist competition which elaborately combines the strengths of some well-known meta-heuristic algorithms with an effective fast local search. A wide range of simulation results, based on real data, clearly demonstrate high efficiency of the proposed algorithm.
机译:由于部署了云解决方案,云计算已变得越来越流行,这将使企业能够降低成本并提高运营灵活性。可靠性是评估此类系统性能的关键指标。容错方法被广泛用于增强云计算系统(CCS)的可靠性。但是,这些方法增加了额外的硬件和/或软件成本。适当的资源分配是一种替代方法,可以在不增加任何额外开销的情况下显着提高系统可靠性。另一方面,在CCS中不考虑能耗和服务质量(QoS)要求的可靠性。本文介绍了一种除了能耗和QoS要求外还用于分析系统可靠性的分析模型。在此模型的基础上,提出了一种新的在线资源分配算法,可以在满足QoS要求的同时找到系统可靠性和能耗之间的最佳折衷方案。该算法是一种新的基于帝国主义竞争的群体智能技术,它巧妙地结合了一些著名的元启发式算法的优势和有效的快速局部搜索。基于真实数据的大量仿真结果清楚地证明了该算法的高效率。

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