Adaptive Programmable Networks for In Materia Neuromorphic Computing

Autor: Kilian Stenning, Jack Gartside, Luca Manneschi, Christopher Cheung, Tony Chen, Alex Vanstone, Jake Love, Holly Holder, Francesco Caravelli, Karin Everschor-Sitte, Eleni Vasilaki, Will Branford
Rok vydání: 2022
DOI: 10.21203/rs.3.rs-2264132/v1
Popis: Nanomagnetic artificial spin-systems are ideal candidates for neuromorphic hardware. Their passive memory, state-dependent dynamics and nonlinear GHz spin-wave response provide powerful computation. However, any single physical reservoir must trade-off between performance metrics including nonlinearity and memory-capacity, with the compromise typically hard-coded. Here, we present three artificial spin-systems and show how tuning system geometry and dynamics defines computing performance. We engineer networks where each node is a high-dimensional physical reservoir, implementing parallel, deep and multilayer physical neural network architectures. This solves the issue of physical reservoir performance compromise, allowing a small suite of synergistic physical systems to address diverse tasks and provide a broad range of reprogrammable computationally-distinct configurations. These networks outperform any single reservoir across a broad taskset. Crucially, we move beyond reservoir computing to present a method for reconfigurably programming inter-layer network connections, enabling on-demand task optimised performance.
Databáze: OpenAIRE