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Online concurrent workload classification for multi-core energy management

机译:多核能管理的在线并发工作负载分类

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Modern embedded multi-core processors are organized as clusters of cores, where all cores in each cluster operate at a common Voltage-frequency (V-f). Such processors often need to execute applications concurrently, exhibiting varying and mixed workloads (e.g. compute- and memory-intensive) depending on the instruction mix and resource sharing. Runtime adaptation is key to achieving energy savings without trading-off application performance with such workload variabilities. In this paper, we propose an online energy management technique that performs concurrent workload classification using the metric Memory Reads Per Instruction (MRPI) and pro-actively selects an appropriate V-f setting through workload prediction. Subsequently, it monitors the workload prediction error and performance loss, quantified by Instructions Per Second (IPS) at runtime and adjusts the chosen V-f to compensate. We validate the proposed technique on an Odroid-XU3 with various combinations of benchmark applications. Results show an improvement in energy efficiency of up to 69% compared to existing approaches.
机译:现代嵌入式多核处理器被组织为核心集群,每个集群中的所有核心都以公共电压 - 频率运行(V -f )。这些处理器通常需要同时执行应用程序,展示不同和混合的工作负载(例如,计算 - 和内存密集型),具体取决于指令混合和资源共享。运行时适应是实现节能而无需交易应用程序性能的关键,具有此类工作量可变性。在本文中,我们提出了一种在线的能量管理技术,其使用所述度量存储器执行并发工作负荷分类读取每条指令(MRPI)和积极主动地选择合适的V <子> -f 通过工作负载预测设定。随后,它监控工作负载预测误差和性能损失,通过运行时通过每秒指令(IPS)量化,并调整所选择的V -f 来补偿。我们以各种基准应用程序组合验证了ODTroid-XU3上的提议技术。结果与现有方法显示出高达69±%的能源效率的提高。

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