关于减少基于神经网络的CNN加速器的乘法次数

Vasilis Sakellariou, Vassilis Paliouras, I. Kouretas, H. Saleh, T. Stouraitis
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引用次数: 2

摘要

本文提出了一种利用剩余数系统(RNS)的特性来减少卷积神经网络(cnn)中乘法次数的方法。RNS将基本计算分解为许多小的位宽、独立的通道,这些通道可以并行处理。当然,由于每个RNS通道的动态范围很小,在卷积期间权重核内的公共因子的数量增加。通过识别这些共同因素并重新安排计算顺序,首先执行与相同因素对应的输入特征映射项的添加,对于最先进的CNN模型,乘法次数可以减少多达97%。其余的乘法运算也简化了,因为它们是通过移位加运算或固定操作数的乘法运算实现的。与二进制和传统RNS相比,提出的处理元素(PE)体系结构的ASIC实现分别显示了高达2.67倍和1.64倍的加速。与传统的RNS PE实现相比,该方法还可以减少20%的面积和16%的功耗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On Reducing the Number of Multiplications in RNS-based CNN Accelerators
In this paper, a method to reduce the number of multiplications in Convolutional Neural Networks (CNNs) by exploiting the properties of the Residue Number System (RNS) is proposed. RNS decomposes the elementary computations into a number of small bit-width, independent channels, which can be processed in parallel. Naturally, due to the small dynamic range of each RNS channel, the number of common factors inside the weight kernels during a convolution is increased. By identifying these common factors and by rearranging the order of computations to perform first the additions of the input feature-map terms that correspond to the same factors, the number of multiplications can be reduced up to 97 %, for state-of-the-art CNN models. The remaining multiplications are also simplified, as they are implemented through shift-add operations or fixed-operand multipliers. ASIC implementations of the proposed Processing Element (PE) architecture show a speedup of up to 2.67× and 1.64× compared to the binary and conventional RNS counterparts, respectively. Compared to a conventional RNS PE implementation, the proposed method also leads to a 20% reduction in area and 16% reduction in power consumption.
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