论文标题

任务自适应物理储层计算

Task-adaptive physical reservoir computing

论文作者

Lee, Oscar, Wei, Tianyi, Stenning, Kilian D., Gartside, Jack C., Prestwood, Dan, Seki, Shinichiro, Aqeel, Aisha, Karube, Kosuke, Kanazawa, Naoya, Taguchi, Yasujiro, Back, Christian, Tokura, Yoshinori, Branford, Will R., Kurebayashi, Hidekazu

论文摘要

水库计算是一种神经形态架构,有可能为不断增长的机器学习能源成本提供可行的解决方案。在基于软件的机器学习中,可以轻松地重新配置神经网络属性和性能,以通过更改超参数来适应不同的计算任务。 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我们使用cu $ _2 $ _2 $ _3 $的温度和磁场控制的自旋响应,该$ _3 $ tose tosevers the Progipt​​ the Progive the Correliration the Correlirant the Correlirs toceers toceers toceers toceers toceers of corleirs the corleirs toseve toseve the corleirs,物理储层,开放的机会,可以在各种物理储层系统上应用热力学稳定和可稳定的相位控制,因为我们使用上述(接近) - 室温演示显示了其可转移的性质,并带有Co $ _ {8.5} $ _ {8.5} $ zn $ _ {8.5} $ _ {8.5} $ Mn $ _ {3} $(Fege)$(Fege)。

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 Cu$_2$OSeO$_3$ 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 Co$_{8.5}$Zn$_{8.5}$Mn$_{3}$ (FeGe).

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