基于回归学习的嵌入式异构系统自适应能量最小化

Sheng Yang, R. Shafik, G. Merrett, Edward A. Stott, Joshua M. Levine, James J. Davis, B. Al-Hashimi
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引用次数: 50

摘要

现代嵌入式系统由具有不同能量和性能权衡的异构计算资源组成。这是因为这些资源以不同的方式执行应用程序任务,产生不同的工作负载和能耗。因此,在这些系统中,最小化能耗是具有挑战性的,因为需要在应用任务映射(即在计算资源之间分配任务)和动态电压/频率缩放(DVFS)之间进行持续适应。由于缺乏这种适应性和实际验证,现有方法存在局限性(表1)。本文解决了这一局限性,并提出了一种新的嵌入式异构系统自适应能量最小化方法。该方法的基础是运行时模型,该模型是通过基于回归的系统中不同计算资源之间的能量/性能权衡学习生成的。使用此模型,在运行时将应用程序任务适当地映射到计算资源上,确保给定应用程序性能需求的最小能耗。这种映射还与DVFS控制相结合,以适应性能和工作负载的变化。该方法在Zynq-ZC702平台上进行了设计、工程和验证,该平台由CPU、DSP和FPGA内核组成。通过几个图像处理应用的案例研究表明,与现有方法相比,我们提出的方法可以实现显著的节能(>70%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive energy minimization of embedded heterogeneous systems using regression-based learning
Modern embedded systems consist of heterogeneous computing resources with diverse energy and performance trade-offs. This is because these resources exercise the application tasks differently, generating varying workloads and energy consumption. As a result, minimizing energy consumption in these systems is challenging as continuous adaptation between application task mapping (i.e. allocating tasks among the computing resources) and dynamic voltage/frequency scaling (DVFS) is required. Existing approaches have limitations due to lack of such adaptation with practical validation (Table I). This paper addresses such limitation and proposes a novel adaptive energy minimization approach for embedded heterogeneous systems. Fundamental to this approach is a runtime model, generated through regression-based learning of energy/performance trade-offs between different computing resources in the system. Using this model, an application task is suitably mapped on a computing resource during runtime, ensuring minimum energy consumption for a given application performance requirement. Such mapping is also coupled with a DVFS control to adapt to performance and workload variations. The proposed approach is designed, engineered and validated on a Zynq-ZC702 platform, consisting of CPU, DSP and FPGA cores. Using several image processing applications as case studies, it was demonstrated that our proposed approach can achieve significant energy savings (>70%), when compared to the existing approaches.
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