Structural plasticity‐based hydrogel optical Willshaw model for one‐shot on‐the‐fly edge learning

Author:

Wang Dingchen12,Liu Dingyao1,Lin Yinan1,Yuan Anran3,Zhang Woyu4,Zhao Yaping12,Wang Shaocong12,Chen Xi12,Chen Hegan12,Zhang Yi12,Jiang Yang12,Shi Shuhui12ORCID,Loong Kam Chi12,Chen Jia2,Wei Songrui5,Wang Qing6,Yu Hongyu6,Xu Renjing7,Shang Dashan4ORCID,Zhang Han5,Zhang Shiming1,Wang Zhongrui12ORCID

Affiliation:

1. Department of Electrical and Electronic Engineering The University of Hong Kong Hong Kong the People's Republic of China

2. ACCESS – AI Chip Center for Emerging Smart Systems, InnoHK Centers, Hong Kong Science Park Hong Kong the People's Republic of China

3. School of Computer Science and Engineering, Faculty of Innovation Engineering Macau University of Science and Technology Macau the People's Republic of China

4. Key Laboratory of Microelectronics Devices and Integrated Technology Institute of Microelectronics, Chinese Academy of Sciences Beijing the People's Republic of China

5. Collaborative Innovation Center for Optoelectronic Science Technology, International Collaborative Laboratory of 2D Materials for Optoelectronics, Science and Technology of Ministry of Education Institute of Microscale Optoelectronics, Shenzhen University Shenzhen the People's Republic of China

6. School of Microelectronics Southern University of Science and Technology Shenzhen the People's Republic of China

7. Microelectronics Thrust Function Hub of the Hong Kong University of Science and Technology (Guangzhou) Guagndong the People's Republic of China

Abstract

AbstractAutonomous one‐shot on‐the‐fly learning copes with the high privacy, small dataset, and in‐stream data at the edge. Implementing such learning on digital hardware suffers from the well‐known von‐Neumann and scaling bottlenecks. The optical neural networks featuring large parallelism, low latency, and high efficiency offer a promising solution. However, ex‐situ training of conventional optical networks, where optical path configuration and deep learning model optimization are separated, incurs hardware, energy and time overheads, and defeats the advantages in edge learning. Here, we introduced a bio‐inspired material‐algorithm co‐design to construct a hydrogel‐based optical Willshaw model (HOWM), manifesting Hebbian‐rule‐based structural plasticity for simultaneous optical path configuration and deep learning model optimization thanks to the underlying opto‐chemical reactions. We first employed the HOWM as an all optical in‐sensor AI processor for one‐shot pattern classification, association and denoising. We then leveraged HOWM to function as a ternary content addressable memory (TCAM) of an optical memory augmented neural network (MANN) for one‐shot learning the Omniglot dataset. The HOWM empowered one‐shot on‐the‐fly edge learning leads to 1000× boost of energy efficiency and 10× boost of speed, which paves the way for the next‐generation autonomous, efficient, and affordable smart edge systems.image

Funder

National Natural Science Foundation of China

Publisher

Wiley

Subject

Materials Chemistry,Surfaces, Coatings and Films,Materials Science (miscellaneous),Electronic, Optical and Magnetic Materials

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