End-to-End Performability Analysis for Infrastructure-as-a-Service Cloud: An Interacting Stochastic Models Approach

R. Ghosh, Kishor S. Trivedi, V. Naik, Dong Seong Kim
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引用次数: 127

Abstract

Handling diverse client demands and managing unexpected failures without degrading performance are two key promises of a cloud delivered service. However, evaluation of a cloud service quality becomes difficult as the scale and complexity of a cloud system increases. In a cloud environment, service request from a user goes through a variety of provider specific processing steps from the instant it is submitted until the service is fully delivered. Measurement-based evaluation of cloud service quality is expensive especially if many configurations, workload scenarios, and management methods are to be analyzed. To overcome these difficulties, in this paper we propose a general analytic model based approach for an end-to-end perform ability analysis of a cloud service. We illustrate our approach using Infrastructure-as-a-Service (IaaS) cloud, where service availability and provisioning response delays are two key QoS metrics. A novelty of our approach is in reducing the complexity of analysis by dividing the overall model into sub-models and then obtaining the overall solution by iteration over individual sub-model solutions. In contrast to a single one-level monolithic model, our approach yields a high fidelity model that is tractable and scalable. Our approach and underlying models can be readily extended to other types of cloud services and are applicable to public, private and hybrid clouds.
基础设施即服务云的端到端性能分析:一种交互随机模型方法
处理不同的客户需求和管理意外故障而不降低性能是云交付服务的两个关键承诺。然而,随着云系统的规模和复杂性的增加,云服务质量的评估变得越来越困难。在云环境中,来自用户的服务请求从提交的那一刻起,到服务完全交付为止,要经历各种特定于提供商的处理步骤。基于度量的云服务质量评估是非常昂贵的,特别是在需要分析许多配置、工作负载场景和管理方法的情况下。为了克服这些困难,本文提出了一种基于通用分析模型的方法,用于云服务的端到端执行能力分析。我们使用基础设施即服务(IaaS)云来说明我们的方法,其中服务可用性和供应响应延迟是两个关键的QoS指标。我们方法的新颖之处在于通过将整体模型划分为子模型,然后通过迭代各个子模型解决方案来获得整体解决方案,从而降低了分析的复杂性。与单一的单级整体模型相比,我们的方法产生了一个易于处理和可扩展的高保真模型。我们的方法和底层模型可以很容易地扩展到其他类型的云服务,并且适用于公共云、私有云和混合云。
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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