Optical coherent dot-product chip for sophisticated deep learning regression
Shaofu Xu, Jing Wang, Haowen Shu, Zhike Zhang, Sicheng Yi, Bowen Bai,, Xingjun Wang, Jianguo Liu, and Weiwen Zou

TL;DR
This paper introduces a silicon-based optical coherent dot-product chip capable of performing deep learning regression tasks in the complete real-value domain, demonstrating high accuracy and potential for advanced AI applications.
Contribution
The development of an optical chip that performs complex regression tasks using optical fields in the full real-value domain, with in-situ backpropagation control for hardware deviations.
Findings
Successfully demonstrated image reconstruction comparable to digital computers.
Performs complex regression tasks on neural networks like AUTOMAP.
Operates in complete real-value domain, unlike previous ONNs.
Abstract
Optical implementations of neural networks (ONNs) herald the next-generation high-speed and energy-efficient deep learning computing by harnessing the technical advantages of large bandwidth and high parallelism of optics. However, due to the problems of incomplete numerical domain, limited hardware scale, or inadequate numerical accuracy, the majority of existing ONNs were studied for basic classification tasks. Given that regression is a fundamental form of deep learning and accounts for a large part of current artificial intelligence applications, it is necessary to master deep learning regression for further development and deployment of ONNs. Here, we demonstrate a silicon-based optical coherent dot-product chip (OCDC) capable of completing deep learning regression tasks. The OCDC adopts optical fields to carry out operations in complete real-value domain instead of in only…
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