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首页> 外文期刊>Journal of Parallel and Distributed Computing >Regression-based resource provisioning for session slowdown guarantee in multi-tier Internet servers
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Regression-based resource provisioning for session slowdown guarantee in multi-tier Internet servers

机译:用于多层Internet服务器中会话减慢保证的基于回归的资源配置

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Autonomous management of a multi-tier Internet service involves two critical and challenging tasks, one understanding its dynamic behaviors when subjected to dynamic workloads and second adaptive management of its resources to achieve performance guarantees. We propose a statistical machine learning based approach to achieve session slowdown guarantees of a multi-tier Internet service. Session slowdown is the relative ratio of a session's total queueing delay to its total processing time. It is a compelling performance metric of session-based online transactions because it directly measures userperceived relative performance and it is independent of the session length. However, there is no analytical model for session slowdown on multi-tier servers. We first conduct training to learn the statistical regression models that quantitatively capture an Internet service's dynamic behaviors as relationships between various service parameters. Then, we propose a dynamic resource provisioning approach that utilizes the learned regression models to efficiently achieve session slowdown guarantee under dynamic workloads. The approach is based on the combination of offline training and online monitoring of the Internet service behavior. Simulations using the industry standard TPC-W benchmark demonstrate the effectiveness and efficiency of the regression based resource provisioning approach for session slowdown oriented performance guarantee of a multi-tier e-commerce application.
机译:多层Internet服务的自治管理涉及两项关键且具有挑战性的任务,一项是了解其在承受动态工作负载时的动态行为,其二是对其资源进行自适应管理以实现性能保证。我们提出了一种基于统计机器学习的方法,以实现多层Internet服务的会话减慢保证。会话速度减慢是会话的总排队延迟与其总处理时间的相对比率。它是基于会话的在线交易的引人注目的性能指标,因为它直接测量用户感知的相对性能,并且与会话时长无关。但是,没有用于分析多层服务器上会话速度的分析模型。我们首先进行培训,以学习统计回归模型,该模型可以定量地捕获Internet服务的动态行为,作为各种服务参数之间的关系。然后,我们提出了一种动态资源供应方法,该方法利用学习的回归模型来有效地实现动态工作负载下的会话减慢保证。该方法基于对Internet服务行为的脱机培训和在线监视的结合。使用行业标准TPC-W基准进行的仿真演示了基于回归的资源供应方法的有效性和效率,该方法可为多层电子商务应用提供面向会话慢速的性能保证。

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