Cloud QoS Scaling by Fuzzy Logic

Stefan Frey, Claudia Lüthje, C. Reich, N. Clarke
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引用次数: 21

Abstract

One of the biggest advantages of cloud infrastructures is the elasticity. Cloud services are monitored and based on the resource utilization and performance load, they get scaled up or down, by provision or de-provision of cloud resources. The goal is to guarantee the customers an acceptable performance with a minimum of resources. Such Quality of Service (QoS) characteristics are stated in a contract, called Service Level Agreement (SLA) negotiated between customer and provider. The approach of this paper shows that with additional imprecise information (e.g. expected daytime/week- time performance) modeled with fuzzy logic and used in a behavior, load and performance prediction model, the up and down scaling mechanism of a cloud service can be optimized. Evaluation results confirm, that using this approach, SLA violation can be minimized.
基于模糊逻辑的云QoS扩展
云基础设施的最大优势之一是弹性。对云服务进行监控,并基于资源利用率和性能负载,通过提供或取消云资源来扩展或缩小云服务。目标是用最少的资源保证客户获得可接受的性能。这种服务质量(QoS)特征是在客户和提供商之间协商的称为服务水平协议(SLA)的合同中说明的。本文的方法表明,在行为、负载和性能预测模型中使用模糊逻辑建模的附加不精确信息(例如期望的白天/周时间性能),可以优化云服务的上下扩展机制。评估结果证实,使用该方法可以最大限度地减少SLA违规。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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