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A Fine-Grained Performance-Based Decision Model for Virtualization Application Solution

机译:基于细粒度性能的虚拟化应用解决方案决策模型

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Virtualization technology has been widely applied across a broad range of contemporary datacenters. While constructing a data-center, architects have to choose a Virtualization Application Solution (VAS) to maximize performance as well as minimize cost. However, the performance of a VAS involves a great number of metric concerns, such as virtualization overhead, isolation, manageability, consolidation, and so on. Further, datacenter architects have their own preference of metrics correlate with datacenters' specific application scenarios. Nevertheless, previous research on virtualization performance either focus on a single performance concern or test several metrics respectively, rather than gives a holistic evaluation, which leads to the difficulties in VAS decision-making. In this paper, we propose a fine-grained performance-based decision model termed as VirtDM to aid architects to determine the best VAS for them via quantifying the overall performance of VAS according to datacenter architects' own preference. First, our model defines a measurable, in-depth, fine-grained, human friendly metric system with organized hierarchy to achieve accurate and precise quantitative results. Second, the model harnesses a number of classic Multiple Criteria Decision-Making (MCDM) methods, such as the Analytical Hierarchical Process (AHP), to relieve people's effort of deciding the weight of different metrics base on their own preference accordingly. Our case study addresses an decision process based on three real VAS candidates as an empirical example exploiting VirtDM and demonstrates the effectiveness of our VirtDM model.
机译:虚拟化技术已广泛应用于广泛的当代数据中心。在构建数据中心时,架构师必须选择虚拟化应用程序解决方案(VAS)以最大化性能并最小化成本。但是,VAS的性能涉及很多指标问题,例如虚拟化开销,隔离性,可管理性,整合性等。此外,数据中心架构师对度量标准有自己的偏好,这些度量标准与数据中心的特定应用程序场景相关。尽管如此,先前对虚拟化性能的研究要么只关注单个性能问题,要么分别测试多个指标,而不是进行整体评估,这导致了VAS决策方面的困难。在本文中,我们提出了一种基于性能的细粒度决策模型,称为VirtDM,以帮助架构师根据数据中心架构师的喜好量化VAS的整体性能,从而为他们确定最佳的VAS。首先,我们的模型定义了一个可测量的,深度的,细粒度的,人性化的度量系统,该系统具有组织化的层次结构,以实现准确而精确的定量结果。其次,该模型利用了许多经典的多标准决策方法(MCDM),例如层次分析法(AHP),以减轻人们根据自己的偏好来决定不同度量标准权重的工作。我们的案例研究解决了基于三个实际VAS候选者的决策过程,作为利用VirtDM的经验示例,并证明了我们的VirtDM模型的有效性。

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