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Energy Optimization Oriented Three-Way Clustering Algorithm for Cloud Tasks 被引量:1

Energy Optimization Oriented Three-Way Clustering Algorithm for Cloud Tasks
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摘要 Cloud computing has developed as an important information technology paradigm which can provide on-demand services. Meanwhile,its energy consumption problem has attracted a grow-ing attention both from academic and industrial communities. In this paper,from the perspective of cloud tasks,the relationship between cloud tasks and cloud platform energy consumption is established and analyzed on the basis of the multidimensional attributes of cloud tasks. Furthermore,a three-way clustering algorithm of cloud tasks is proposed for saving energy. In the algorithm,f irst,t he cloud tasks are classified into three categories according to the content properties of the cloud tasks and resources respectively. Next,cloud tasks and cloud resources are clustered according to their computation characteristics( e. g. computation-intensive,data-intensive). Subsequently,greedy scheduling is performed. The simulation results showthat the proposed algorithm can significantly reduce the energy cost and improve resources utilization,compared with the general greedy scheduling algorithm. Cloud computing has developed as an important information technology paradigm which can provide on-demand services. Meanwhile,its energy consumption problem has attracted a grow-ing attention both from academic and industrial communities. In this paper,from the perspective of cloud tasks,the relationship between cloud tasks and cloud platform energy consumption is established and analyzed on the basis of the multidimensional attributes of cloud tasks. Furthermore,a three-way clustering algorithm of cloud tasks is proposed for saving energy. In the algorithm,f irst,t he cloud tasks are classified into three categories according to the content properties of the cloud tasks and resources respectively. Next,cloud tasks and cloud resources are clustered according to their computation characteristics( e. g. computation-intensive,data-intensive). Subsequently,greedy scheduling is performed. The simulation results showthat the proposed algorithm can significantly reduce the energy cost and improve resources utilization,compared with the general greedy scheduling algorithm.
出处 《Journal of Beijing Institute of Technology》 EI CAS 2018年第2期189-197,共9页 北京理工大学学报(英文版)
基金 Supported by the Harbin Technology Bureau Youth Talented Project(2014RFQXJ073) China Postdoctoral Fund Projects(2014M561330)
关键词 cloud computing cloud energy three-way cluster task attributes cloud computing cloud energy three-way cluster task attributes
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  • 1Yun D, Lee J. Research in green network for future Inter- net. Journal of KIISE, 2010, 28(1): 41-51.
  • 2Andrew L L, Lin M, Wierman A. Optimality, fairness, and robustness in speed sealing designs//Proceedings of the ACM International Conference on Measurement and Modeling of International Computer Systems (SIGMETRICS 2010). New York, USA, 2010:1 -12.
  • 3Rao Lei, Liu Xue, Xie Le. Minimizing electricity cost: Opti- mization of distributed Internet data centers in a multi- electricity-market environment//Proeeedings of the 29th IEEE Conference on Computer Communications (INFOCOM' 10). San Diego, USA, 2010:1-9.
  • 4Garg S, Yeob Chee Shin, Buyya Rajkumar. Environment- conscious scheduling of HPC applications on distributed Cloud-oriented data centers. Journal of Parallel and Distributed Computing, 2011, 71(6): 732-749.
  • 5Zhang Qi, Zhu Quanyan, Boutaba Raouf. Dynamic resource allocation for spot markets in cloud computing environ- ments//Proceedings of the 4th IEEE/ACM International Conference on Utility and Cloud Computing. Victoria, Australia, 2011:178-185.
  • 6Le6n Xavier, Navarro Leandro. Limits of energy saving for the allocation of data center resources to networked appliea- tions//Proeeedings of the 30th IEEE Conference on Computer Communications (INFOCOM' 11 ). Barcelona, Spain, 2011 : 216-220.
  • 7Le Kien, Zhang Jingru, Meng Jiandong. Reducing electricity cost through virtual machine placement in high performance computing clouds//Proceedings of the 2011 International Conference for High Performance Computing, Networking, Storage and Analysis. Seattle, USA, 2011:1-12.
  • 8Macias Mario, Guitart Jordi. A genetic model for pricing in cloud computing markets//Proceedings of the 2011 ACM Symposium on Applied Computing. New York, USA, 2011: 113-118.
  • 9Shang Shifeng, Wu Yongwei, Wang Bo. An intelligent capacity planning model for cloud market. Journal of Internet Services and Information Security, 2011, 71(6): 37-45.
  • 10Wang Hongyi, Jing Qingfeng. Distributed systems meet eco- nomies Pricing in the cloud//Proeeedings of the 2nd USENIX Conference on Hot Topics in Cloud Computing. Berkeley, USA, 2011:1-6.

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