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Multicriteria decision making based optimum virtual machine selection technique for smart cloud environment

机译:基于多轨道决策的智能云环境的最优虚拟机选择技术

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In the popular field of cloud computing, millions of job requests arrive at the data centre for execution. The job of the data centre is to optimally allocate virtual machines (VMs) to these job requests in order to use resources efficiently. In the future smart cities, huge amount of job requests and data will be generated by the Internet of Things (IoT) devices which will influence the designing of optimum resource management of smart cloud environments. The present paper analyses the performance efficiency of the data centre with and without job request consolidation. First, the work load performance of the data centre was analysed without job request consolidation, exhibiting that the job requests to VM assignment was highly imbalanced, and only 5% of VMs were running with a load factor of more than 70%. Then, the technique for order of preference by similarity to ideal solution-based VM selection algorithm was applied, which was able to select the best VM using parameters such as the provisioned or available central processing unit capacity, provisioned or available memory capacity, and state of machine (running, hibernated, or available). The Bitbrains dataset consisting of 1750 VMs was used to analyse the performance of the proposed methodology. The analysis concluded that the proposed methodology was capable of serving all job requests using less than 24% VMs with improved load efficiency. The fewer number of VMs with an improved load factor guarantees energy saving and an increase in the overall running efficiency of the smart data centre environment.
机译:在流行的云计算领域中,数百万个作业请求到达数据中心进行执行。数据中心的作业是最佳地将虚拟机(VM)分配给这些作业请求,以便有效地使用资源。在未来的智能城市中,将通过互联网(物联网)设备(IOT)设备产生大量的工作请求和数据,这将影响智能云环境的最佳资源管理的设计。本文分析了与就业要求合并的数据中心的性能效率。首先,分析数据中心的工作负载性能而没有作业请求整合,表现出对VM分配的作业请求高度不平衡,只有5%的VMS运行,负载系数超过70%。然后,应用了通过相似性与基于理想的基于解决方案的VM选择算法的优先顺序的技术,其能够使用诸如供应或可用的中央处理单元容量,提供或可用的存储容量和状态的参数选择最佳VM机器(运行,休眠或可用)。由1750个VM组成的BitBrans数据集用于分析所提出的方法的性能。该分析得出结论,该方法能够使用少于24%的VM,以提高负载效率,提供所有工作请求。具有改进的负载系数的VM数量越多,可确保节能和智能数据中心环境的整体运行效率的增加。

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