Litcius/Paper detail

Neuromorphic Binarized Polariton Networks

Rafał Mirek, Andrzej Opala, P. Comaron, Magdalena Furman, Mateusz Król, Krzysztof Tyszka, Bartłomiej Seredyński, Dario Ballarini, D. Sanvitto, T. C. H. Liew, W. Pacuski, J. Suffczyński, Jacek Szczytko, Michał Matuszewski, Barbara Piętka

2021Nano Letters61 citationsDOIOpen Access PDF

Abstract

The rapid development of artificial neural networks and applied artificial intelligence has led to many applications. However, current software implementation of neural networks is severely limited in terms of performance and energy efficiency. It is believed that further progress requires the development of neuromorphic systems, in which hardware directly mimics the neuronal network structure of a human brain. Here, we propose theoretically and realize experimentally an optical network of nodes performing binary operations. The nonlinearity required for efficient computation is provided by semiconductor microcavities in the strong quantum light-matter coupling regime, which exhibit exciton-polariton interactions. We demonstrate the system performance against a pattern recognition task, obtaining accuracy on a par with state-of-the-art hardware implementations. Our work opens the way to ultrafast and energy-efficient neuromorphic systems taking advantage of ultrastrong optical nonlinearity of polaritons.

Topics & Concepts

Neuromorphic engineeringComputer scienceArtificial neural networkUltrashort pulsePolaritonEfficient energy useNonlinear systemComputationQuantum computerComputer architectureElectronic engineeringPhysicsArtificial intelligenceQuantumOptoelectronicsEngineeringElectrical engineeringOpticsAlgorithmQuantum mechanicsLaserNeural Networks and Reservoir ComputingStrong Light-Matter InteractionsMechanical and Optical Resonators