Vipul Mudgill, G. Aujla, Neeraj Kumar, M. Obaidat, R. Prodan
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引用次数: 4
摘要
云计算(CC)是现代最流行的技术之一,它根据最终用户的需求为他们提供无缝连接和服务。在CC中,通过使用虚拟化,可以实现有效的资源利用,从而提高在此环境中实现的任何解决方案的性能。然而,为了向最终用户提供服务,云数据中心(dc)内服务器的规模和数量呈指数级增长,这提高了现代数据中心对高效虚拟机管理的需求。然而,文献中报道的大多数聚类技术都是基于质心的,其中VM集群的数量是预定义的,这使得它们高度依赖于数据的位置。此外,这些现有的建议强调将数据安排在具有相同数量VM集群的球形结构中。为了缓解所有这些问题,在本文中,我们提出了Tukey?基于s-HSD的TBC (s-HSD Based Clustering),为一组虚拟机的聚类提供了较高的准确性。该方案利用cpu利用率和RAM利用率这两个关键参数对虚拟机进行集群。使用正态曲线和方差分析(ANOVA)测试以及TBC测试来评估所有虚拟机的成员性,对具有不同资源利用率的虚拟机进行比较。就这些指标而言,与同类其他最先进的竞争方案相比,发现所提议方案的性能优越。
DLopC: Data Locality Independency-Aware VM Clustering in Cloud Computing
Cloud Computing (CC) is one of the most popular technologies of the modern era, which provides seamless connectivity and services to the end users as per their demands. In CC, using virtualization, efficient resource utilization can be achieved which in turn increases the performance of any implemented solution in this environment. However, in order to provide the services to the end users, there is an exponential increase in the size and number of servers within the cloud data centers (DCs) which raises the need of efficient VM management in modern DCs. However, most of the clustering techniques reported in the literature are centroid based in which the number of VM clusters are predefined, which makes them highly dependent on the location of the data. Moreover, these existing proposals emphasize on arranging the data in a spherical structure with equal number of VM clusters. To mitigate all these issues, in this paper, we propose Tukey?s-HSD Based Clustering (TBC), which provides high accuracy for clustering a set of VMs. In the proposed scheme by using the two key parameters-CPU and RAM utilization, VMs are clustered. VMs having different resource utilization are compared using the Normal Curve and Analysis of Variance (ANOVA) test along with the TBC test for evaluating the membership of all VMs. With respect to these metrics, the performance of the proposed scheme is found to be superior in comparison to the other state-of-the-art competing schemes of its category.