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Modeling and performance analysis of large scale IaaS Clouds

机译:大规模IaaS云的建模和性能分析

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For Cloud based services to support enterprise class production workloads, Mainframe like predictable performance is essential. However, the scale, complexity, and inherent resource sharing across workloads make the Cloud management for predictable performance difficult. As a first step towards designing Cloud based systems that achieve such performance and realize the service level objectives, we develop a scalable stochastic analytic model for performance quantification of Infrastructure-as-a-Service (IaaS) Cloud. Specifically, we model a class of IaaS Clouds that offer tiered services by configuring physical machines into three pools with different provisioning delay and power consumption characteristics. Performance behaviors in such IaaS Clouds are affected by a large set of parameters, e.g., workload, system characteristics and management policies. Thus, traditional analytic models for such systems tend to be intractable. To overcome this difficulty, we propose a multi-level interacting stochastic sub-models approach where the overall model solution is obtained iteratively over individual sub-model solutions. By comparing with a single-level monolithic model, we show that our approach is scalable, tractable, and yet retains high fidelity. Since the dependencies among the sub-models are resolved via fixed-point iteration, we prove the existence of a solution. Results from our analysis show the impact of workload and system characteristics on two performance measures: mean response delay and job rejection probability.
机译:对于支持企业级生产工作负载的基于云的服务,可预测的性能等大型机至关重要。但是,跨工作负载的规模,复杂性和固有资源共享使Cloud Management难以实现可预测的性能。作为设计可实现此类性能并实现服务水平目标的基于云的系统的第一步,我们开发了可扩展的随机分析模型以对基础架构即服务(IaaS)云的性能进行量化。具体来说,我们为一类IaaS云建模,该类IaaS云通过将物理机配置为具有不同配置延迟和功耗特征的三个池来提供分层服务。此类IaaS云中的性能行为会受到大量参数的影响,例如工作负载,系统特征和管理策略。因此,用于此类系统的传统分析模型往往很难处理。为了克服这个困难,我们提出了一种多层次的相互作用随机子模型方法,其中整个模型解决方案是在单个子模型解决方案上迭代获得的。通过与单层整体模型进行比较,我们证明了我们的方法是可伸缩的,易于处理的,但仍保留了高保真度。由于子模型之间的依赖关系是通过定点迭代解决的,因此我们证明了解决方案的存在。我们的分析结果表明工作负载和系统特性对两个性能指标的影响:平均响应延迟和工作拒绝概率。

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