Towards On-Chip Optical FFTs for Convolutional Neural Networks

J. George, Hani Nejadriahi, V. Sorger
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引用次数: 11

Abstract

Convolutional neural networks have become an essential element of spatial deep learning systems. In the prevailing architecture, the convolution operation is performed with Fast Fourier Transforms (FFT) electronically in GPUs. The parallelism of GPUs provides an efficiency over CPUs, however both approaches being electronic are bound by the speed and power limits of the interconnect delay inside the circuits. Here we present a silicon photonics based architecture for convolutional neural networks that harnesses the phase property of light to perform FFTs efficiently. Our all-optical FFT is based on nested Mach-Zender Interferometers, directional couplers, and phase shifters, with backend electro-optic modulators for sampling. The FFT delay depends only on the propagation delay of the optical signal through the silicon photonics structures. Designing and analyzing the performance of a convolutional neural network deployed with our on-chip optical FFT, we find dramatic improvements by up to 10^3 when compared to state-of-the-art GPUs when exploring a compounded figure-of-merit given by power per convolution over area. At a high level, this performance is enabled by mapping the desired mathematical function, an FFT, synergistically onto hardware, in this case optical delay interferometers.
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面向卷积神经网络的片上光学fft
卷积神经网络已成为空间深度学习系统的重要组成部分。在主流架构中,卷积运算是通过快速傅里叶变换(FFT)在gpu中以电子方式执行的。gpu的并行性提供了比cpu更高的效率,然而这两种方法都是电子的,受到电路内部互连延迟的速度和功率限制。在这里,我们提出了一种基于硅光子学的卷积神经网络架构,该架构利用光的相位特性来有效地执行fft。我们的全光FFT基于嵌套的马赫-曾德干涉仪,定向耦合器和移相器,后端电光调制器用于采样。FFT延迟仅取决于光信号通过硅光子学结构的传播延迟。设计和分析使用我们的片上光学FFT部署的卷积神经网络的性能,我们发现在探索由面积上的每次卷积功率给出的复合性能图时,与最先进的gpu相比,有高达10^3的显着改进。在高层次上,这种性能是通过将所需的数学函数(FFT)协同映射到硬件(在这种情况下是光延迟干涉仪)来实现的。
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