Scalable Magnonic Neural Networks
Scalable Magnonic Neural Networks
Disciplines
Physics, Astronomy (100%)
Keywords
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Magnetism,
Spin Waves And Magnonics,
Parametric Instability,
Artificial Intelligence,
Machine Learning,
Inverse Design
Artificial Intelligence (AI) is changing the worldnot only how we interact with technology, but also how we conduct scientific research. Yet behind AIs impressive capabilities lies a problem: the energy and hardware demands of current AI systems are enormous. To address this, researchers are exploring entirely new ways to build computers that work more like the human brainand do so with much greater energy efficiency. One promising path is called magnonics. Instead of using electricity to carry and process data, magnonics uses tiny wavescalled spin wavesthat travel through magnetic materials. These waves can encode and manipulate information using their phase and amplitude, much like neurons in the brain use electrical signals. They operate at very high frequencies (in the gigahertz range), enabling ultra-fast and compact devices. The MagNeuro project aims to take a big step forward in this field by building the first truly scalable magnonic neural networks. The idea is to create small processing units, designed by artificial intelligence through a method called inverse design, which are capable of recognizing patternslike vowel sounds in speechby using wave interference. These building blocks are then linked together using nanoscale amplifiers that boost the wave signals, making it possible to combine them into larger networks, much like how layers of neurons form a brain. In the framework of the project, new nano- scale localized parametric amplifiers will also be developed. These are essential for amplifying weak signals and enabling the cascading of individual computing units into an integrated, multi-layered network. To achieve this, MagNeuro brings together experts from Austria, Hungary, Germany, Ukraine, and the Czech Republic. They will combine advanced theory, powerful computer simulations, and cutting-edge nanofabrication techniques. The magnetic materials usedsuch as ultra-thin films of yttrium-iron-garnetwill be carefully structured and tested using specialized optical and microwave instruments. MagNeuro will pave the way for an entirely new class of computing hardware: faster, smaller, and far more energy-efficient than todays silicon-based technology. This research could have major impacts on how we build future AI systems, process information in telecommunications, and design devices for everything from speech recognition to data security. This project is strongly focused on combining and enhancing the expertise of the participating research teams. The core team includes Univ.-Prof. Dr. Andrii Chumak and Univ.-Prof. Dr. Dieter Süss from the Faculty of Physics at the University of Vienna, Austria, as well as Assoc. Prof. Dr. Gyorgy Csaba from the Pzmny Péter Catholic University in Budapest, Hungary.
- Universität Wien - 100%
- Dieter Süss, Universität Wien , national collaboration partner
- Urbánek Michal, Brno University of Technology - Czechia
- Markus Becherer, Technische Universität München - Germany
- Roman Verba, Institute of Magnetism NAS of Ukraine and MES of Ukraine - Ukraine
Research Output
- 9 Citations
- 4 Publications
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2025
Title NeuralMag: an open-source nodal finite-difference code for inverse micromagnetics DOI 10.1038/s41524-025-01688-1 Type Journal Article Author Abert C Journal npj Computational Materials Pages 193 Link Publication -
2025
Title Reconstruction of magnetic structures and material parameters with convolutional neural network and bias field-constrained micromagnetic relaxation DOI 10.1038/s41598-025-27151-1 Type Journal Article Author Suess D Journal Scientific Reports Pages 42867 Link Publication -
2025
Title Deeply Nonlinear Magnonic Directional Coupler DOI 10.1021/acs.nanolett.5c02758 Type Journal Article Author Ge X Journal Nano Letters Pages 13490-13495 -
2025
Title Spin-wave microscale RF delay lines for mid- and high-frequency 5G band DOI 10.1063/5.0286108 Type Journal Article Author DavÃdková K Journal Journal of Applied Physics Pages 143908 Link Publication