npj Computational Materials (Jul 2024)

Targeted materials discovery using Bayesian algorithm execution

  • Sathya R. Chitturi,
  • Akash Ramdas,
  • Yue Wu,
  • Brian Rohr,
  • Stefano Ermon,
  • Jennifer Dionne,
  • Felipe H. da Jornada,
  • Mike Dunne,
  • Christopher Tassone,
  • Willie Neiswanger,
  • Daniel Ratner

DOI
https://doi.org/10.1038/s41524-024-01326-2
Journal volume & issue
Vol. 10, no. 1
pp. 1 – 12

Abstract

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Abstract Rapid discovery and synthesis of future materials requires intelligent data acquisition strategies to navigate large design spaces. A popular strategy is Bayesian optimization, which aims to find candidates that maximize material properties; however, materials design often requires finding specific subsets of the design space which meet more complex or specialized goals. We present a framework that captures experimental goals through straightforward user-defined filtering algorithms. These algorithms are automatically translated into one of three intelligent, parameter-free, sequential data collection strategies (SwitchBAX, InfoBAX, and MeanBAX), bypassing the time-consuming and difficult process of task-specific acquisition function design. Our framework is tailored for typical discrete search spaces involving multiple measured physical properties and short time-horizon decision making. We demonstrate this approach on datasets for TiO2 nanoparticle synthesis and magnetic materials characterization, and show that our methods are significantly more efficient than state-of-the-art approaches. Overall, our framework provides a practical solution for navigating the complexities of materials design, and helps lay groundwork for the accelerated development of advanced materials.