云计算数据中心增强的两阶段虚拟机布局方案

Rahimatu Hayatu Yahaya, Faruku Umar Ambursa
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引用次数: 1

摘要

多年来,云计算提供了许多好处,例如按需向最终用户提供服务。然而,作为服务提供者的基础设施面临着处理许多最终用户对虚拟资源请求的挑战。在这方面,资源分配的主要挑战之一是虚拟机布局问题。然而,云平台的动态性和不确定性以及最终用户请求的不可预测性使得VMP问题变得更加有趣。最近,提出了一种结合在线(动态)和离线(静态)两种方式优点的两阶段虚拟机布局方案。该方案基于一种基于预测的触发方法,用于确定何时触发VMP重构阶段。然而,现有的方法导致预测结果的准确性较低,从而导致重构阶段的最优解较少。本文提出了一种基于新型触发方法的增强两阶段虚拟机布局策略。所提出的触发方法考虑了阻尼趋势指数平滑法。对之前的方法进行了实验评估,考虑了160个场景。实验结果表明,与基准方法相比,该方法实现了最小代价函数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhanced Two-Phase Virtual Machine Placement Scheme for Cloud Computing Datacenters
Over the years, Cloud Computing has offered many benefits such as providing services to end-users on demand. However, infrastructure as service providers is faced with the challenge of handling many end-users’ requests for virtual resources. In this regard, one of the key challenges of resource allocation is Virtual Machine Placement (VMP) problem. However, the dynamicity and uncertainty of Cloud platform and the unpredictable nature of the end-users’ requests have rendered the VMP problem more interesting. Recently, a two-phase Virtual Machine Placement scheme, combining the benefits of both online (dynamic) and offline (static) formulations were presented. The proposed scheme is based on a prediction-based triggering method used to determine when to trigger the VMP reconfiguration phase. However, the existing method leads to a less accurate prediction outcome, therefore, results in less optimal solution from the reconfiguration phase. This work proposes an enhanced two-phase Virtual Machine Placement strategy based on novel triggering method. The proposed triggering method considers Damped trend exponential smoothing method. An experimental evaluation is performed against the previous approach, considering 160 scenarios. The experimental results show that the proposed work achieved a minimum cost function when compared with the benchmark approach.
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