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Performability analysis of a cloud system

机译:云系统的性能分析

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摘要

Cloud computing has recently emerged as an important filed with numerous novel features, particularly, large-scale resource integration and virtualized resource provisioning. Since a cloud system essentially aims at service-oriented computing, service performance becomes the primary metric that needs analyzing in detail. However, in a realistic scenario, operation of virtual machines (VM) may be interrupted by random resource failures. This demonstrates that service performance is indeed affected by resource reliability. Thus, connecting performance and reliability is essential for making more precise evaluation. In this paper, we present a theoretical modeling approach for performability analysis of cloud services and the cloud system. This flexible modeling approach first builds two tractable submodels that consider an important correlation factor (i.e., available resource capacity that is not only decided by reliability but also has a significant effect on performance) to ensure the required fidelity. Then, a Bayesian method is applied to connect the submodels, which can make our performability model more scalable. In contrast to a monolithic modeling method, our approach that combines interacting submodels can effectively reduce computing complexity for a large-scale cloud system. Numerical examples are illustrated.
机译:云计算最近已成为具有众多新颖功能的重要文件,特别是大规模资源集成和虚拟化资源配置。由于云系统本质上是针对面向服务的计算,因此服务性能成为需要详细分析的主要指标。但是,在实际情况下,虚拟机(VM)的操作可能会因随机资源故障而中断。这表明服务性能确实受到资源可靠性的影响。因此,连接性能和可靠性对于进行更精确的评估至关重要。在本文中,我们提出了一种用于云服务和云系统的性能分析的理论建模方法。这种灵活的建模方法首先构建了两个易于处理的子模型,这些模型考虑了重要的相关因素(即可用资源容量不仅由可靠性决定,而且对性能有重大影响)以确保所需的保真度。然后,应用贝叶斯方法来连接子模型,这可以使我们的性能模型更具可伸缩性。与整体建模方法相比,我们的方法结合了相互作用的子模型,可以有效降低大型云系统的计算复杂性。举例说明了数值示例。

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