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Efficient Autoscaling in the Cloud Using Predictive Models for Workload Forecasting

机译:使用预测模型进行有效的云计算中的高效自动缩放

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Large-scale component-based enterprise applications that leverage Cloud resources expect Quality of Service(QoS) guarantees in accordance with service level agreements between the customer and service providers. In the context of Cloud computing, auto scaling mechanisms hold the promise of assuring QoS properties to the applications while simultaneously making efficient use of resources and keeping operational costs low for the service providers. Despite the perceived advantages of auto scaling, realizing the full potential of auto scaling is hard due to multiple challenges stemming from the need to precisely estimate resource usage in the face of significant variability in client workload patterns. This paper makes three contributions to overcome the general lack of effective techniques for workload forecasting and optimal resource allocation. First, it discusses the challenges involved in auto scaling in the cloud. Second, it develops a model-predictive algorithm for workload forecasting that is used for resource auto scaling. Finally, empirical results are provided that demonstrate that resources can be allocated and deal located by our algorithm in a way that satisfies both the application QoS while keeping operational costs low.
机译:利用云资源的大型基于组件的企业应用程序期望根据客户与服务提供商之间的服务级别协议,提供服务质量(QoS)保证。在云计算的背景下,自动扩展机制有望确保为应用程序提供QoS属性,同时有效利用资源并降低服务提供商的运营成本。尽管自动扩展具有公认的优势,但是由于面临着客户端工作负载模式的巨大变化而需要精确估计资源使用情况的诸多挑战,因此很难充分发挥自动扩展的全部潜力。本文做出了三点贡献,以克服普遍缺乏有效的工作量预测和最佳资源分配技术的问题。首先,它讨论了云中自动扩展所涉及的挑战。其次,它开发了用于工作量预测的模型预测算法,该算法可用于资源自动扩展。最后,提供的实验结果表明,我们的算法可以满足应用程序QoS的同时又保持较低的运营成本,因此可以分配和处理资源。

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