Energy efficient job scheduling with workload prediction on cloud data center |
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Authors: | Xiaoyong Tang Xiaoyi Liao Jie Zheng Xiaopan Yang |
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Affiliation: | 1.Information Science and Technology College/Southern Regional Collaborative Innovation Center for Grain and Oil Crops in China,Hunan Agricultural University,Changsha,China;2.State Key Laboratory for Novel Software Technology,Nanjing University,Nanjing,China |
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Abstract: | Data centers are the backbone of cloud infrastructure platform to support large-scale data processing and storage. More and more business-to-consumer and enterprise applications are based on cloud data center. However, the amount of data center energy consumption is inevitably lead to high operation costs. The aim of this paper is to comprehensive reduce energy consumption of cloud data center servers, network, and cooling systems. We first build an energy efficient cloud data center system including its architecture, job and power consumption model. Then, we combine the linear regression and wavelet neural network techniques into a prediction method, which we call MLWNN, to forecast the cloud data center short-term workload. Third, we propose a heuristic energy efficient job scheduling with workload prediction solution, which is divided into resource management strategy and online energy efficient job scheduling algorithm. Our extensive simulation performance evaluation results clearly demonstrate that our proposed solution has good performance and is very suitable for low workload cloud data center. |
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