English

Task-adaptive physical reservoir computing

Materials Science 2023-07-31 v3 Mesoscale and Nanoscale Physics

Abstract

Reservoir computing is a neuromorphic architecture that potentially offers viable solutions to the growing energy costs of machine learning. In software-based machine learning, neural network properties and performance can be readily reconfigured to suit different computational tasks by changing hyperparameters. This critical functionality is missing in ``physical" reservoir computing schemes that exploit nonlinear and history-dependent memory responses of physical systems for data processing. Here, we experimentally present a `task-adaptive' approach to physical reservoir computing, capable of reconfiguring key reservoir properties (nonlinearity, memory-capacity and complexity) to optimise computational performance across a broad range of tasks. As a model case of this, we use the temperature and magnetic-field controlled spin-wave response of Cu2_2OSeO3_3 that hosts skyrmion, conical and helical magnetic phases, providing on-demand access to a host of different physical reservoir responses. We quantify phase-tunable reservoir performance, characterise their properties and discuss the correlation between these in physical reservoirs. This task-adaptive approach overcomes key prior limitations of physical reservoirs, opening opportunities to apply thermodynamically stable and metastable phase control across a wide variety of physical reservoir systems, as we show its transferable nature using above(near)-room-temperature demonstration with Co8.5_{8.5}Zn8.5_{8.5}Mn3_{3} (FeGe).

Keywords

Cite

@article{arxiv.2209.06962,
  title  = {Task-adaptive physical reservoir computing},
  author = {Oscar Lee and Tianyi Wei and Kilian D. Stenning and Jack C. Gartside and Dan Prestwood and Shinichiro Seki and Aisha Aqeel and Kosuke Karube and Naoya Kanazawa and Yasujiro Taguchi and Christian Back and Yoshinori Tokura and Will R. Branford and Hidekazu Kurebayashi},
  journal= {arXiv preprint arXiv:2209.06962},
  year   = {2023}
}

Comments

Main manuscript: 14 pages, 5 figures. Supplementary materials: 13 pages, 10 figures