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Autoscaling of cores in multicore processors using power and thermal workload signatures

机译:使用电源和散热工作负载签名自动缩放多核处理器中的内核

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摘要

Autoscaling of cloud clusters based on dynamic estimation of workloads is a well-known practice in data center management. However, this practice has not been widely adopted in the multicore processor area due to the lack of a real-time workload classification front end. In this paper, we present a novel methodology for core autoscaling in multicore processors. The methodology is based on the identification of workload signatures at both the core and the thread level. In particular, correlations between thread-based performance counters are used to decide thread migration policies to maximize per-core utilization and reduce the number of active cores. Power, thermal, and performance-aware autoscaling policies are presented, and extensive numerical experiments are used to illustrate the advantages of our algorithm for real-time multicore power and performance management.
机译:基于工作负载的动态估计的云集群自动伸缩是数据中心管理中的一种众所周知的做法。但是,由于缺乏实时工作负载分类前端,因此这种做法尚未在多核处理器领域广泛采用。在本文中,我们提出了一种用于多核处理器中内核自动缩放的新颖方法。该方法基于在核心和线程级别识别工作负载签名。特别是,基于线程的性能计数器之间的相关性用于确定线程迁移策略,以最大程度地提高每个内核的利用率并减少活动内核的数量。提出了功率,热和性能感知的自动缩放策略,并使用大量的数值实验来说明我们的算法在实时多核功率和性能管理中的优势。

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