高效节能的FFT技术用于深度卷积神经网络

Nhan Nguyen-Thanh, Han Le-Duc, Duc-Tuyen Ta, Van-Tam Nguyen
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引用次数: 11

摘要

深度卷积神经网络(cnn)已被广泛应用于图像识别、自然语言处理等领域。然而,由于对计算高维卷积所需的计算资源和能量的大量需求,在家庭和移动设备中部署深度cnn仍然具有挑战性。在本文中,我们提出了一种新的方法,旨在最大限度地减少深度cnn卷积计算中的能量消耗。提出的解决方案包括(i)与分割输入特征映射相关的快速傅里叶变换(FFT)配置的最佳选择方法,(ii)用于计算基于2D-FFT的高维卷积的可重构硬件架构,以及(iii)最佳管道数据移动调度。FFT大小选择方法使我们能够确定最小能量消耗的分割输入的最佳长度。硬件架构包含一个处理引擎(PE)阵列,PE阵列之间连接形成平行的灵活长度的Radix-2单延迟反馈线,可以计算可变大小的2D-FFT。在2D-FFT过程中,管道数据移动调度优化了行式FFT和列式FFT之间的转换,并最大限度地减少了跨输入通道元素积累所需的数据访问。通过仿真,我们证明了在推理情况下,所提出的框架将能耗提高了89.7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Energy efficient techniques using FFT for deep convolutional neural networks
Deep convolutional neural networks (CNNs) has been developed for a wide range of applications such as image recognition, nature language processing, etc. However, the deployment of deep CNNs in home and mobile devices remains challenging due to substantial requirements for computing resources and energy needed for the computation of high-dimensional convolutions. In this paper, we propose a novel approach designed to minimize energy consumption in the computation of convolutions in deep CNNs. The proposed solution includes (i) an optimal selection method for Fast Fourier Transform (FFT) configuration associated with splitting input feature maps, (ii) a reconfigurable hardware architecture for computing high-dimensional convolutions based on 2D-FFT, and (iii) an optimal pipeline data movement scheduling. The FFT size selecting method enables us to determine the optimal length of the split input for the lowest energy consumption. The hardware architecture contains a processing engine (PE) array, whose PEs are connected to form parallel flexible-length Radix-2 single-delay feedback lines, enabling the computation of variable-size 2D-FFT. The pipeline data movement scheduling optimizes the transition between row-wise FFT and column-wise FFT in a 2D-FFT process and minimizes the required data access for the element-wise accumulation across input channels. Using simulations, we demonstrated that the proposed framework improves the energy consumption by 89.7% in the inference case.
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