Resource Management for Minimizing Energy and Cost of Geo-Distributed Data Centers

Moh Moh Than
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Abstract

Geo-distributed data centers (GDCs) house computing resources and provide cloud services across the world. As cloud computing flourishes, energy consumption and electricity cost for powering servers of GDCs also soar high. Energy consumption and cost minimization for GDCs has become the main challenge for the cloud service providers. This paper proposes a resource management framework that accomplishes resource demand prediction, ensuring service level objective (SLO), electricity price prediction, and energy-efficient and cost-effective resource allocation through GDCs. This paper also proposes an energy-efficient and cost-effective resource allocation (EECERA) algorithm which deploys energy efficiency factors and incorporates the electricity price diversity of GDCs. Extensive evaluations were performed based on real-world workload traces and real-life electricity price data of GDC locations. The evaluation results showed that the resource demand prediction model could predict the right amount of dynamic resource demand while achieving SLO, and also, the electricity price prediction model could provide promising accuracy. The performances of resource allocation algorithms were evaluated on CloudSim. This work contributes to minimizing the energy consumption and the average turnaround time taken to complete the task and offers cost-saving. HIGHLIGHTS SLO guaranteed, energy-efficient and cost-effective resource management framework Energy-efficient and cost-effective resource allocation (EECERA) algorithm Extensive evaluations based on real-world workload traces and real-life electricity price data of GDC locations Performances of resource allocation algorithms evaluated on CloudSim Minimizing the energy consumption and the average turnaround time taken to complete the task and also cost-saving GRAPHICAL ABSTRACT
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实现分布式数据中心能源和成本最小化的资源管理
地理分布式数据中心(gdc)存储计算资源,并在全球范围内提供云服务。随着云计算的蓬勃发展,驱动gdc服务器的能源消耗和电力成本也在飙升。gdc的能耗和成本最小化已经成为云服务提供商面临的主要挑战。本文提出了一个资源管理框架,该框架通过gdc实现资源需求预测、服务水平目标(SLO)保障、电价预测以及节能高效的资源配置。本文还提出了一种考虑能源效率因素和gdc电价差异的高效节能资源分配算法(EECERA)。根据GDC所在地的实际工作负荷轨迹和实际电价数据进行了广泛的评估。评价结果表明,资源需求预测模型能够在实现电力系统低成本运行的同时预测出适量的动态资源需求,且电价预测模型具有良好的准确性。在CloudSim上对资源分配算法的性能进行了评价。这项工作有助于最大限度地减少能源消耗和完成任务所需的平均周转时间,并节省成本。高光slo保证,节能和具有成本效益的资源管理框架节能和具有成本效益的资源分配(EECERA)算法基于实际工作负载跟踪和GDC位置的实际电价数据的广泛评估在cloudsim上评估的资源分配算法的性能最小化能源消耗和完成任务所需的平均循环时间,并节省成本
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