Recently, Tsinghua University has achieved a significant breakthrough in the field of optical computing, successfully developing the "Taiji-II" optical training chip. This advancement enables efficient and precise training of large-scale neural networks in optical computing systems. This innovative achievement was jointly completed by the research team led by Professor Fang Lu from the Department of Electronic Engineering and Academician Dai Qionghai from the Department of Automation at Tsinghua University. They pioneered a full-forward intelligent optical computing training architecture, opening new avenues for the development of optical computing technology.

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In recent years, intelligent optical computing has attracted significant attention in the field of computing power development due to its high computational power and low power consumption. The previous general-purpose intelligent optical computing chip "Taiji" has moved optical computing from principle verification to large-scale experimental applications, achieving a system-level energy efficiency of 160TOPS/W. However, existing optical neural network training still heavily relies on GPUs for offline modeling and requires precise alignment of the physical system, which limits the further development of optical computing technology.

The successful development of the "Taiji-II" optical training chip overcomes these limitations. According to Tsinghua University, this new chip can train various optical systems and demonstrate excellent performance across multiple tasks. It no longer relies on GPUs for offline modeling, simplifying the training process and providing an efficient and precise new method for large-scale neural network training in optical computing systems.

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This breakthrough is of great significance. It not only showcases China's research strength and innovative capabilities in cutting-edge technologies but also has the potential to promote the widespread application of optical computing technology in areas such as artificial intelligence and big data processing. With the advent of the "Taiji-II" optical training chip, optical computing technology will see significant improvements in training capabilities and application scope, paving the way for the development of more efficient and intelligent computing systems in the future.

Paper link: https://www.nature.com/articles/s41586-024-07687-4