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Energy-Efficient Task Partitioning for CNN-based Object Detection in Heterogeneous Computing Environment

机译:异构计算环境中基于CNN的对象检测的节能任务分区

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Along with the high accuracy and the various use-cases of CNN, the number of services which are based on CNN continues to grow. Thanks to the development of GPU, a hardware accelerator for parallel processing, CNN have become powerful despite of its large amount of computations. In recent year, many studies have suggested using FPGA as a CNN accelerator due to its advantages over GPU. However, using these two accelerators together can greatly improve the processing performance because GPU and FPGA have complementary characteristics. Although there are some scheduling algorithms in the literature for the heterogeneous platform, they do not consider power efficiency and compliance with the deadline of an application at the same time. This paper found that the most power efficient accelerator is different for each sub-layers of CNN. It confirmed that task partitioning in the unit of sub-layers can improve the energy-efficiency of the system. Based on this finding this paper proposes an energy-efficient adaptive task partitioning scheme for CNN-based service. Experimental results show that the proposed scheduling consumes less energy than EDP method while satisfying the requested deadline of tasks.
机译:随着CNN的高精度和各种用例,基于CNN的服务数量继续增长。由于GPU的开发,尽管其计算量大,但CNN的硬件加速器已经变得强大。近年来,由于其优于GPU,许多研究建议使用FPGA作为CNN加速器。但是,使用这两个加速器一起可以大大提高加工性能,因为GPU和FPGA具有互补特性。尽管在异构平台的文献中存在一些调度算法,但它们不考虑电力效率并同时遵守应用程序的截止日期。本文发现,对于CNN的每个子层来说,最动力效率的加速器是不同的。它确认,子层单元中的任务分区可以提高系统的能量效率。基于此发现,本文提出了一种基于CNN的服务的节能适应性任务分区方案。实验结果表明,建议的调度比EDP方法消耗更少的能量,同时满足所要求的任务截止日期。

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