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An Energy-Efficient Deep Convolutional Neural Network Inference Processor With Enhanced Output Stationary Dataflow in 65-nm CMOS

机译:节能型深度卷积神经网络推理处理器,具有增强的65nm CMOS输出固定数据流

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摘要

We propose a deep convolutional neural network (CNN) inference processor based on a novel enhanced output stationary (EOS) dataflow. Based on the observation that some activations are commonly used in two successive convolutions, the EOS dataflow employs dedicated register files (RFs) for storing such reused activation data to eliminate redundant memory accesses for highly energy-consuming SRAM banks. In addition, processing elements (PEs) are split into multiple small groups such that each group covers a tile of input activation map to increase the usability of activation RFs (ARFs). The processor has two different voltage/frequency domains. The computation domain with 512 PEs operates at near-threshold voltage (NTV) (0.4 V) and 60-MHz frequency to increase energy efficiency, while the rest of the processors including 848-KB SRAMs run at 0.7 V and 120-MHz frequency to increase both on-chip and off-chip memory bandwidths. The measurement results show that our processor is capable of running AlexNet at 831 GOPS/W, VGG-16 at 1151 GOPS/W, ResNet-18 at 1004 GOPS/W, and MobileNet at 948 GOPS/W energy efficiency.
机译:我们提出了一种基于新型增强型输出平稳(EOS)数据流的深度卷积神经网络(CNN)推理处理器。基于观察到某些激活通常在两个连续的卷积中使用,EOS数据流使用专用寄存器文件(RF)来存储此类重用的激活数据,从而消除了对高能耗SRAM库的冗余存储器访问。另外,将处理元件(PE)分成多个小组,以使每个组覆盖输入激活图的图块,以增加激活RF(ARF)的可用性。处理器具有两个不同的电压/频率域。具有512个PE的计算域以接近阈值电压(NTV)(0.4 V)和60 MHz的频率工作,以提高能效,而其余的包括848 KB SRAM的处理器以0.7 V和120 MHz的频率运行,增加片上和片外存储器带宽。测量结果表明,我们的处理器能够以831 GOPS / W的速度运行AlexNet,以1151 GOPS / W的速度运行VGG-16,以1004 GOPS / W的速度运行ResNet-18,并以948 GOPS / W的效率运行MobileNet。

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