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On-the-fly closed-loop materials discovery via Bayesian active learning

Author

Listed:
  • A. Gilad Kusne

    (National Institute of Standards and Technology
    University of Maryland)

  • Heshan Yu

    (University of Maryland)

  • Changming Wu

    (University of Washington)

  • Huairuo Zhang

    (National Institute of Standards and Technology
    Theiss Research, Inc.)

  • Jason Hattrick-Simpers

    (National Institute of Standards and Technology)

  • Brian DeCost

    (National Institute of Standards and Technology)

  • Suchismita Sarker

    (Stanford Synchrotron Radiation Lightsource, SLAC National Accelerator Laboratory)

  • Corey Oses

    (Duke University)

  • Cormac Toher

    (Duke University)

  • Stefano Curtarolo

    (Duke University)

  • Albert V. Davydov

    (National Institute of Standards and Technology)

  • Ritesh Agarwal

    (University of Pennsylvania)

  • Leonid A. Bendersky

    (National Institute of Standards and Technology
    Theiss Research, Inc.)

  • Mo Li

    (University of Washington)

  • Apurva Mehta

    (Stanford Synchrotron Radiation Lightsource, SLAC National Accelerator Laboratory)

  • Ichiro Takeuchi

    (University of Maryland
    University of Maryland)

Abstract

Active learning—the field of machine learning (ML) dedicated to optimal experiment design—has played a part in science as far back as the 18th century when Laplace used it to guide his discovery of celestial mechanics. In this work, we focus a closed-loop, active learning-driven autonomous system on another major challenge, the discovery of advanced materials against the exceedingly complex synthesis-processes-structure-property landscape. We demonstrate an autonomous materials discovery methodology for functional inorganic compounds which allow scientists to fail smarter, learn faster, and spend less resources in their studies, while simultaneously improving trust in scientific results and machine learning tools. This robot science enables science-over-the-network, reducing the economic impact of scientists being physically separated from their labs. The real-time closed-loop, autonomous system for materials exploration and optimization (CAMEO) is implemented at the synchrotron beamline to accelerate the interconnected tasks of phase mapping and property optimization, with each cycle taking seconds to minutes. We also demonstrate an embodiment of human-machine interaction, where human-in-the-loop is called to play a contributing role within each cycle. This work has resulted in the discovery of a novel epitaxial nanocomposite phase-change memory material.

Suggested Citation

  • A. Gilad Kusne & Heshan Yu & Changming Wu & Huairuo Zhang & Jason Hattrick-Simpers & Brian DeCost & Suchismita Sarker & Corey Oses & Cormac Toher & Stefano Curtarolo & Albert V. Davydov & Ritesh Agarw, 2020. "On-the-fly closed-loop materials discovery via Bayesian active learning," Nature Communications, Nature, vol. 11(1), pages 1-11, December.
  • Handle: RePEc:nat:natcom:v:11:y:2020:i:1:d:10.1038_s41467-020-19597-w
    DOI: 10.1038/s41467-020-19597-w
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    Cited by:

    1. Nathan J. Szymanski & Pragnay Nevatia & Christopher J. Bartel & Yan Zeng & Gerbrand Ceder, 2023. "Autonomous and dynamic precursor selection for solid-state materials synthesis," Nature Communications, Nature, vol. 14(1), pages 1-13, December.

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