SUANPAN: Scalable Photonic Linear Vector Machine
Ziyue Yang, Chen Li, Yuqia Ran, Yongzhuo Li, Xue Feng, Kaiyu Cui, Fang Liu, Hao Sun, Wei Zhang, Yu Ye, Fei Qiao, Cun-Zheng Ning, Jiaxing Wang, Connie J.Chang-Hasnain, Yidong Huang

TL;DR
The paper introduces a scalable, reconfigurable photonic linear vector machine architecture inspired by an abacus, enabling high-speed vector inner product computations for AI, with a proof-of-concept implementation demonstrating its feasibility.
Contribution
It proposes a novel, scalable photonic vector machine architecture that performs inner products using independent units, overcoming previous scaling limitations and integrating with electronic systems.
Findings
Successfully implemented an 8x8 photonic vector machine prototype.
Demonstrated high-speed, scalable inner product computation.
Potential to enhance AI computing power through photonic integration.
Abstract
Photonic linear operation is a promising approach to handle the extensive vector multiplications in artificial intelligence techniques due to the natural bosonic parallelism and high-speed information transmission of photonics. Although it is believed that maximizing the interaction of the light beams is necessary to fully utilize the parallelism and tremendous efforts have been made in past decades, the achieved dimensionality of vector-matrix multiplication is very limited due to the difficulty of scaling up a tightly interconnected or highly coupled optical system. Additionally, there is still a lack of a universal photonic computing architecture that can be readily merged with existing computing system to meet the computing power demand of AI techniques. Here, we propose a programmable and reconfigurable photonic linear vector machine to perform only the inner product of two…
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Taxonomy
TopicsNeural Networks and Reservoir Computing · Optical Network Technologies · Photonic and Optical Devices
