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Scalable Analytic Models for Performance Efficiency in the Cloud

机译:云中性能效率的可扩展分析模型

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This paper presents a scalable model-driven approach to quantify the availability of resources and optimal distribution of tasks over these resources, such that the average response time of tasks is minimized. To reduce the complexity of analysis and solution time, we use an integrated stochastic based approach. To achieve this, first we use clustering algorithm to group the tasks into distinct classes with similar characteristics in terms of resource and performance requirements. Second, we quantify the resource availability of cloud center among three states: active (running), idle (turned on, but not ready), and off (turned off). Third, we develop a queuing model for multiple heterogeneous multicore servers, and formulate and solve the optimal load distribution of tasks for multiple heterogeneous multicore servers in a cloud computing data centers. We derive equations that permit us to find optimal load distribution of tasks that their average response time is minimized. We obtain not only detailed assessment of cloud center performance, but also insights into equilibrium arrangement, capacity planning and power consumption to be kept under control.
机译:本文提出了一种可扩展的模型驱动方法,用于量化资源的可用性以及任务在这些资源上的最佳分配,从而使任务的平均响应时间最小化。为了减少分析和解决方案时间的复杂性,我们使用了基于集成的随机方法。为此,首先我们使用聚类算法将任务分为资源和性能要求方面具有相似特征的不同类。其次,我们在以下三种状态之间量化云中心的资源可用性:活动(运行),空闲(打开但未准备就绪)和关闭(关闭)。第三,我们为多个异构多核服务器开发了一个排队模型,并为云计算数据中心中的多个异构多核服务器制定并解决了任务的最佳负载分配。我们导出方程式,使我们能够找到任务的最佳负载分配,以使其平均响应时间最小化。我们不仅获得了对云中心性能的详细评估,而且还获得了对平衡安排,容量规划和功耗保持可控状态的见解。

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