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A neuromorphic processor with on-chip learning for beyond-CMOS device integration

Author

Listed:
  • Hugh Greatorex

    (Zernike Institute for Advanced Materials, University of Groningen
    University of Groningen)

  • Ole Richter

    (Technical University of Denmark
    Yale University)

  • Michele Mastella

    (Neuronova Ltd.)

  • Madison Cotteret

    (Zernike Institute for Advanced Materials, University of Groningen
    University of Groningen
    Technische Universität Ilmenau)

  • Philipp Klein

    (Zernike Institute for Advanced Materials, University of Groningen
    University of Groningen)

  • Maxime Fabre

    (Zernike Institute for Advanced Materials, University of Groningen
    University of Groningen
    Forschungszentrum Jülich)

  • Arianna Rubino

    (ETH Zurich
    University of Zurich and ETH Zurich)

  • Willian Soares Girão

    (Zernike Institute for Advanced Materials, University of Groningen
    University of Groningen)

  • Junren Chen

    (University of Zurich and ETH Zurich)

  • Martin Ziegler

    (Kiel University)

  • Laura Bégon-Lours

    (ETH Zurich)

  • Giacomo Indiveri

    (University of Zurich and ETH Zurich)

  • Elisabetta Chicca

    (Zernike Institute for Advanced Materials, University of Groningen
    University of Groningen)

Abstract

Recent advances in memory technologies, devices, and materials have shown great potential for integration into neuromorphic electronic systems. However, a significant gap remains between the development of these materials and the realization of large-scale, fully functional systems. One key challenge is determining which devices and materials are best suited for specific functions and how they can be paired with complementary metal-oxide-semiconductor circuitry. To address this, we present a mixed-signal neuromorphic architecture designed to explore the integration of on-chip learning circuits and novel two- and three-terminal devices. The chip serves as a platform to bridge the gap between silicon-based neuromorphic computation and the latest advancements in emerging devices. In this paper, we demonstrate the readiness of the architecture for device integration through comprehensive measurements and simulations. The processor provides a practical system for testing bio-inspired learning algorithms alongside emerging devices, establishing a tangible link between brain-inspired computation and cutting-edge device research.

Suggested Citation

  • Hugh Greatorex & Ole Richter & Michele Mastella & Madison Cotteret & Philipp Klein & Maxime Fabre & Arianna Rubino & Willian Soares Girão & Junren Chen & Martin Ziegler & Laura Bégon-Lours & Giacomo I, 2025. "A neuromorphic processor with on-chip learning for beyond-CMOS device integration," Nature Communications, Nature, vol. 16(1), pages 1-14, December.
  • Handle: RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-61576-6
    DOI: 10.1038/s41467-025-61576-6
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