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TERN: A Self-Adjusting Thermal Model for Dynamic Resource Provisioning in Data Centers

机译:TERN:用于数据中心动态资源配置的自调整热模型

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Dynamic resource provisioning becomes a practical approach to achieving high thermal and energy efficiency, improving scalability, and optimizing reliability for e-commercial applications running in modern data centers. In this paper, we propose a self-adjusting model called TERN to predict thermal behaviors of hardware resources for client sessions. Our TERN contains two major components: (1) a resource utilization model being responsible for estimating hardware usage based on the number of running client transactions, and (2) a thermal model that discovers correlation between resource utilization and their temperatures. TERN is conducive to predicting thermal trends of diverse workload conditions with a changing transaction mix. We apply the TPC-W benchmark to characterize the resource demands of each type of transactions. Then, we conduct a thermal profiling study of the benchmark with various transaction mixes. TERN judiciously adjusts the models to maintain prediction accuracy for dynamically changing request patterns. Experimental results show that TERN provides a simple yet powerful solution for resource provisioning in thermal-aware data centers where exist rapidly changing workload conditions.
机译:动态资源供应已成为实现高热效率和能源效率,提高可伸缩性以及优化现代数据中心中运行的电子商务应用程序可靠性的实用方法。在本文中,我们提出了一种称为TERN的自调整模型,以预测客户端会话的硬件资源的热行为。我们的TERN包含两个主要组件:(1)资源利用模型,负责根据正在运行的客户端事务的数量估算硬件使用;以及(2)热模型,用于发现资源利用与其温度之间的相关性。 TERN有助于通过不断变化的交易组合来预测各种工作负载条件下的热量趋势。我们应用TPC-W基准来表征每种交易类型的资源需求。然后,我们对各种交易组合进行基准的热分析研究。 TERN明智地调整模型以保持预测准确性,以动态更改请求模式。实验结果表明,TERN为热感知数据中心中资源快速变化的工作负载条件提供了一种简单而强大的解决方案。

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