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Completed H2020 European Commission

k-space Neural computation with magnEtic exciTations

€3.04M EUR

Funder European Commission
Recipient Organization Centre National de la Recherche Scientifique CNRS
Country France
Start Date Jan 01, 2021
End Date Jun 30, 2024
Duration 1,276 days
Number of Grantees 8
Roles Participant; Third Party; Coordinator
Data Source European Commission
Grant ID 899646
Grant Description

Artificial neural networks represent a key component of neuro-inspired computing for non-Boolean computational tasks.

They emulate the brain by using nonlinear elements acting as neurons that are interconnected through artificial synapses. However, such physical implementations face two major challenges.

First, interconnectivity is often constrained because of limits in lithography techniques and circuit architecture design; connections are limited to 100s, compared with 10000s in the human brain.

Second, changing the weight of these individual interconnects dynamically requires additional memory elements attached to these links.Here, we propose an innovative architecture to circumvent these issues.

It is based on the idea that dynamical hyperconnectivity can be implemented not in real space but in reciprocal or k-space.

To demonstrate this novel approach we have selected ferromagnetic nanostructures in which populations of spin waves the elementary excitations play the role of neurons.

The key feature of magnetization dynamics is its strong nonlinearity, which, when coupled with external stimuli like applied fields and currents, translates into two useful features: (i) nonlinear interactions through exchange and dipole-dipole interactions couple potentially all spin wave modes together, thereby creating high connectivity; (ii) the strength of the coupling depends on the population of each k mode, thereby allowing for synaptic weights to be modified dynamically.

The breakthrough concept here is that real-space interconnections are not necessary to achieve hyper-connectivity or reconfigurable synaptic weights.The final goal is to provide a proof-of-concept of a k-space neural network based on interacting spin waves in low-loss materials such as yttrium iron garnet (YIG).

The relevant spin wave eigenmodes are in the GHz range and can be accessed by microwave fields and spin-orbit torques to achieve k-space Neural computation with magnEtic exciTations.

All Grantees

C.R.E.A.T.E. Consorzio Di Ricerca Per L'Energia L Automazione E Le Tecnologie Dell'Elettromagnetismo; Universitaet Muenster; Commissariat A L Energie Atomique Et Aux Energies Alternatives; Agencia Estatal Consejo Superior de Investigaciones Cientificas; Pazmany Peter Katolikus Egyetem; Universite Paris-Saclay; Thales; Centre National de la Recherche Scientifique CNRS

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