Abstract:
Physical limitations on the operation speed of electronic devices has motivated the search for alternative ways to process information. The past few years have seen the development of neuromorphic photonics—a branch of photonics where the physics of optical and optoelectronic devices is combined with mathematical algorithms of artificial neural networks. Such a symbiosis allows certain classes of computation prob„lems, including some involving artificial intelligence, to be solved with greater speed and higher energy efficiency than can be reached with electronic devices based on the von Neumann architecture. We review optical analog computing, photonic neural networks, and methods of matrix multiplication by optical means, and discuss the advantages and disadvantages of existing approaches.
National Center for Physics and Mathematics in Sarov
This research was carried out in the framework of the scientific program of the National Center for Physics and Mathematics (project National Center for Studying Supercomputer Architectures) and with the support of the Intellect Nonprofit Foundation for the Development of Science and Education.
Received:November 8, 2022 Revised:July 4, 2023 Accepted: July 5, 2023
Citation:
A. I. Musorin, A. S. Shorokhov, A. A. Chezhegov, T. G. Baluyan, K. R. Safronov, A. V. Chetvertukhin, A. A. Grunin, A. A. Fedyanin, “Photonics approaches to the implementation of neuromorphic computing”, UFN, 193:12 (2023), 1284–1297; Phys. Usp., 66:12 (2023), 1211–1223