Physics‐Aware Analytic‐Gradient Training of Photonic Neural Networks

Author:

Zhan Yuancheng1,Zhang Hui12ORCID,Lin Hexiang1,Chin Lip Ket3,Cai Hong4,Karim Muhammad Faeyz5,Poenar Daniel Puiu1,Jiang Xudong5,Mak Man‐Wai6,Kwek Leong Chuan17,Liu Ai Qun12

Affiliation:

1. Quantum Science and Engineering Centre (QSec) Nanyang Technological University Singapore 639798 Singapore

2. Institute of Quantum Technology (IQT) The Hong Kong Polytechnic University Hong Kong 999077 Hong Kong

3. Department of Electrical Engineering City University of Hong Kong Hong Kong 999077 Hong Kong

4. Institute of Microelectronics A*STAR Singapore 138634 Singapore

5. School of Electrical & Electronic Engineering Nanyang Technological University Singapore 639798 Singapore

6. Department of Electronic and Information Engineering The Hong Kong Polytechnic University Hong Kong 999077 Hong Kong

7. Centre for Quantum Technologies National University of Singapore Singapore 117543 Singapore

Abstract

AbstractPhotonic neural networks (PNNs) have emerged as promising alternatives to traditional electronic neural networks. However, the training of PNNs, especially the chip implementation of analytic gradient descent algorithms that are recognized as highly efficient in traditional practice, remains a major challenge because physical systems are not differentiable. Although training methods such as gradient‐free and numerical gradient methods are proposed, they suffer from excessive measurements and limited scalability. State‐of‐the‐art in situ training method is also cost‐challenged, requiring expensive in‐line monitors and frequent optical I/O switching. Here, a physics‐aware analytic‐gradient training (PAGT) method is proposed that calculates the analytic gradient in a divide‐and‐conquer strategy, overcoming the difficulty induced by chip non‐differentiability in the training of PNNs. Multiple training cases, especially a generative adversarial network, are implemented on‐chip, achieving a significant reduction in time consumption (from 31 h to 62 min) and a fourfold reduction in energy consumption, compared to the in situ method. The results provide low‐cost, practical, and accelerated solutions for training hybrid photonic‐digital electronic neural networks.

Funder

National Research Foundation

Ministry of Education - Singapore

Publisher

Wiley

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