Exploring Types of Photonic Neural Networks for Imaging and Computing-A Review

Nanomaterials (Basel). 2024 Apr 17;14(8):697. doi: 10.3390/nano14080697.

Abstract

Photonic neural networks (PNNs), utilizing light-based technologies, show immense potential in artificial intelligence (AI) and computing. Compared to traditional electronic neural networks, they offer faster processing speeds, lower energy usage, and improved parallelism. Leveraging light's properties for information processing could revolutionize diverse applications, including complex calculations and advanced machine learning (ML). Furthermore, these networks could address scalability and efficiency challenges in large-scale AI systems, potentially reshaping the future of computing and AI research. In this comprehensive review, we provide current, cutting-edge insights into diverse types of PNNs crafted for both imaging and computing purposes. Additionally, we delve into the intricate challenges they encounter during implementation, while also illuminating the promising perspectives they introduce to the field.

Keywords: artificial intelligence; feedforward neural network; photonic neural networks; recurrent neural network; spiking neural network.

Publication types

  • Review

Grants and funding

This work was supported by the Analytical Center for the Government of the Russian Federation (agreement identifier 000000D730324P540002, grant No 70-2023-001317 dated 28 December 2023).