自主云资源管理

B. Dewangan, A. Agarwal, M. Venkatadri, Ashutosh Pasricha
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引用次数: 9

摘要

云的资源利用率影响着云服务的运营成本。由于云用户和需求呈指数级增长,服务提供商需要对追索权进行相应的管理,以便在服务质量约束(QoS)下为服务提供商和云用户提供最大的利润。为了保持QoS,服务水平协议(SLA)的违反率、资源能耗、成本和执行时间应该更少。能源效率和SLA违反率是本研究的重点。本文通过自优化降低了能耗,通过自修复方法最小化了SLA违反率,并将故障VM从资源池中分离出来。在继续的过程中,资源的运行成本得到了优化,并且记录的执行时间更少。在cloudsim工具包中对所提出的方法进行了模拟,用不同的工作负载集评估了性能指标,观察了本研究及其实验结果,并与现有框架进行了比较分析,证明了最佳性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Autonomic Cloud Resource Management
Resource utilization of cloud affect the operational cost of cloud services. Since cloud user and demands increasing exponentially, the service provider needs to manage the recourse accordingly so that maximum profit can be provide to the service provider as well as cloud user with the quality of service constraint (QoS). To maintain QoS, service level agreement (SLA) violation rate, energy consumption by resources, cost, and execution time should be less. The energy efficiency and SLA violation rate are the major focused key point of this work. In this paper, energy consumption has been reducing through self-optimization, and SLA violation rate is minimized by self-healing methods and separate faulty VM from the resource pool. In continue, the operating cost of resources has been optimizing and less execution time has recorded. The proposed method is simulated in cloudsim toolkit, evaluates the performance metrics with a different set of workloads and the observation of this research and its experimental results and comparative analysis with existing frameworks are evidence of utmost performance.
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