An Energy-Efficient Accelerator Architecture with Serial Accumulation Dataflow for Deep CNNs

Mehdi Ahmadi, S. Vakili, J. M. P. Langlois
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引用次数: 5

Abstract

Convolutional Neural Networks (CNNs) have shown outstanding accuracy for many vision tasks during recent years. When deploying CNNs on portable devices and embedded systems, however, the large number of parameters and computations result in long processing time and low battery life. An important factor in designing CNN hardware accelerators is to efficiently map the convolution computation onto hardware resources. In addition, to save battery life and reduce energy consumption, it is essential to reduce the number of DRAM accesses since DRAM consumes orders of magnitude more energy compared to other operations in hardware. In this paper, we propose an energy-efficient architecture which maximally utilizes its computational units for convolution operations while requiring a low number of DRAM accesses. The implementation results show that the proposed architecture performs one image recognition task using the VGGNet model with a latency of 393 ms and only 251.5 MB of DRAM accesses.
基于串行积累数据流的深度cnn节能加速器架构
近年来,卷积神经网络(cnn)在许多视觉任务中显示出出色的准确性。然而,在便携式设备和嵌入式系统上部署cnn时,大量的参数和计算导致处理时间长,电池寿命低。设计CNN硬件加速器的一个重要因素是有效地将卷积计算映射到硬件资源上。此外,为了节省电池寿命和降低能耗,减少DRAM访问的次数是必不可少的,因为与硬件中的其他操作相比,DRAM消耗的能量要多得多。在本文中,我们提出了一个节能的架构,最大限度地利用其计算单元进行卷积操作,同时需要少量的DRAM访问。实现结果表明,该架构使用VGGNet模型完成了一个图像识别任务,延迟为393 ms,仅需要251.5 MB的DRAM访问。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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