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AI-Guided Workflows for the Discovery of Novel Materials

ORAL · Invited

Abstract

The intricate interplay of several underlying processes governing certain materials' properties and functions prevents the explicit, atomistic modelling and hinders the discovery of novel materials. In this talk, I will discuss an artificial-intelligence (AI) approach to identify the key descriptive parameters, termed "materials genes", correlated with the materials performance and reflecting the physical processes that trigger, facilitate, or hinder the materials' behavior.[1] The symbolic-regression sure-independence-screening-and-sparsifying-operator (SISSO) method leverages the typically small high-quality datasets in computational and experimental materials science and it is applied in active-learning workflows[2,3] to guide the discovery of improved, or even novel materials.

Publication: [1] Foppa, L., et al. MRS Bulletin (2021), 46, 1016.<br>[2] Boley, M., et al. section 2.1 in Modelling Simul. Mater. Sci. Eng. (2024) 32, 063301.<br>[3] Nair, A. S., et al. arXiv:2412.05947 (2024).

Presenters

  • Lucas Foppa

    Fritz Haber Institute of the Max Planck Society, The NOMAD Laboratory at FHI, Max Planck Society

Authors

  • Lucas Foppa

    Fritz Haber Institute of the Max Planck Society, The NOMAD Laboratory at FHI, Max Planck Society