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Analytical evaluation of resource allocation algorithms and process migration methods in virtualized systems

机译:虚拟化系统中资源分配算法和过程迁移方法的分析评估

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In this paper, analytical models, based on the stochastic reward nets (SRNs), are proposed to analyze the impact of resource allocation algorithms and process migration methods on the power consumption and performance of virtualized systems. In the proposed models, each computer offers a certain capacity of computational, data, and communication resources and resource requesters, namely processes, are categorized into three main categories: compute-intensive, data-intensive and communication-intensive, according to their required resources. Since the processing rate of a computer reduces when the number of the processes running on the computer increases, we apply the migration methods to keep the performance of the system at a high level and reduce the power consumption as much as it is possible. The proposed SRNs appropriately model the migration of processes among computers by applying two types of migration methods: power-aware and performance-aware. Furthermore, by applying the proposed models, different resource allocation algorithms, e.g. First-fit, Best-fit, Worst-fit, and Random, can be compared in terms of the power consumption and performance. The numerical results, cross-validated with the CloudSim framework, show that the proposed models can be appropriately used to analyze different resource allocation algorithms and migration methods, and thereby, help system providers to make treatment decisions with confidence. (C) 2019 Elsevier Inc. All rights reserved.
机译:本文提出了一种基于随机奖励网(SRN)的分析模型,以分析资源分配算法和过程迁移方法对虚拟化系统的功耗和性能的影响。在提出的模型中,每台计算机都提供一定容量的计算,数据和通信资源,并且资源请求者(即进程)根据其所需资源分为三大类:计算密集型,数据密集型和通信密集型。由于当计算机上运行的进程数增加时,计算机的处理速率会降低,因此我们采用了迁移方法,以使系统的性能保持较高水平,并尽可能降低功耗。提议的SRN通过应用两种类型的迁移方法(功率意识和性能意识)来适当地模拟计算机之间的进程迁移。此外,通过应用所提出的模型,不同的资源分配算法例如可以在功耗和性能方面比较“最适合”,“最适合”,“最不适合”和“随机”。与CloudSim框架进行交叉验证的数值结果表明,所提出的模型可以适当地用于分析不同的资源分配算法和迁移方法,从而帮助系统提供商自信地做出治疗决策。 (C)2019 Elsevier Inc.保留所有权利。

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