Proceedings Article10.1109/icocn59242.2023.10236411
Microring Modulators Based Optical Matrix-matrix Multiplication Accelerators
Weiwei Pan,Jinhua Chen,Ruoyun Yao,Zhangwan Peng,Wanshu Xiong,Chen Ji +5 more
- 31 Jul 2023
pp 1-3
TL;DR: Microring modulators based optical matrix-matrix multiplication accelerators simulate a highly parallel, scalable and compact optical neural network accelerator that performs matrix-matrix multiplication.
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Abstract: We propose and simulate a highly parallel, scalable and compact optical neural network accelerator which is able to perform matrix-matrix multiplication based on the microring modulators. Simulation results confirm its feasibility for matrix-matrix multiplication.
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