Zhou Hailong, Dong Jianji, Cheng Junwei, Dong Wenchan, Huang Chaoran, Shen Yichen, Zhang Qiming, Gu Min, Qian Chao, Chen Hongsheng, Ruan Zhichao, Zhang Xinliang
Wuhan National Laboratory for Optoelectronics, Huazhong University of Science and Technology, Wuhan, 430074, China.
Department of Electronic Engineering, The Chinese University of Hong Kong, Shatin, Hong Kong, China.
Light Sci Appl. 2022 Feb 3;11(1):30. doi: 10.1038/s41377-022-00717-8.
Matrix computation, as a fundamental building block of information processing in science and technology, contributes most of the computational overheads in modern signal processing and artificial intelligence algorithms. Photonic accelerators are designed to accelerate specific categories of computing in the optical domain, especially matrix multiplication, to address the growing demand for computing resources and capacity. Photonic matrix multiplication has much potential to expand the domain of telecommunication, and artificial intelligence benefiting from its superior performance. Recent research in photonic matrix multiplication has flourished and may provide opportunities to develop applications that are unachievable at present by conventional electronic processors. In this review, we first introduce the methods of photonic matrix multiplication, mainly including the plane light conversion method, Mach-Zehnder interferometer method and wavelength division multiplexing method. We also summarize the developmental milestones of photonic matrix multiplication and the related applications. Then, we review their detailed advances in applications to optical signal processing and artificial neural networks in recent years. Finally, we comment on the challenges and perspectives of photonic matrix multiplication and photonic acceleration.
矩阵计算作为科学技术中信息处理的基本组成部分,在现代信号处理和人工智能算法中占据了大部分计算开销。光子加速器旨在加速光域中的特定计算类别,特别是矩阵乘法,以满足对计算资源和能力不断增长的需求。光子矩阵乘法在扩展电信领域方面具有很大潜力,并且人工智能也因其卓越性能而受益。最近关于光子矩阵乘法的研究蓬勃发展,可能为开发目前传统电子处理器无法实现的应用提供机会。在这篇综述中,我们首先介绍光子矩阵乘法的方法,主要包括平面光转换法、马赫-曾德尔干涉仪法和波分复用法。我们还总结了光子矩阵乘法的发展里程碑及相关应用。然后,我们回顾它们近年来在光信号处理和人工神经网络应用方面的详细进展。最后,我们对光子矩阵乘法和光子加速的挑战与前景进行评论。