Probabilistic photonic computing with chaotic light

Brückerhoff-Plückelmann F; Borras H; Klein B; Varri A; Becker M; Dijkstra J; Brückerhoff M; Wright CD; Salinga M; Bhaskaran H; Risse B; Fröning H; Pernice W

Research article (journal) | Peer reviewed

Abstract

Biological neural networks effortlessly tackle complex computational problems and excel at predicting outcomes from noisy, incomplete data. Artificial neural networks (ANNs), inspired by these biological counterparts, have emerged as powerful tools for deciphering intricate data patterns and making predictions. However, conventional ANNs can be viewed as ``point estimates''that do not capture the uncertainty of prediction, which is an inherently probabilistic process. In contrast, treating an ANN as a probabilistic model derived via Bayesian inference poses significant challenges for conventional deterministic computing architectures. Here, we use chaotic light in combination with incoherent photonic data processing to enable high-speed probabilistic computation and uncertainty quantification. We exploit the photonic probabilistic architecture to simultaneously perform image classification and uncertainty prediction via a Bayesian neural network. Our prototype demonstrates the seamless cointegration of a physical entropy source and a computational architecture that enables ultrafast probabilistic computation by parallel sampling.

Details about the publication

JournalNature Communications
Volume15
Issue1
Page range10445-10445
StatusPublished
Release year2024
Language in which the publication is writtenEnglish
DOI10.1038/s41467-024-54931-6
Link to the full texthttps://doi.org/10.1038/s41467-024-54931-6
Keywordsartificial neural networks, photonics, probabilistic computing, machine learning

Authors from the University of Münster

Becker, Marlon
Professorship of Geoinformatics for Sustainable Development (Prof. Risse)
Risse, Benjamin
Professorship of Geoinformatics for Sustainable Development (Prof. Risse)