MRS Meetings and Events

 

MT01.11.07 2024 MRS Spring Meeting

Robust Machine Learning allows Accurate Modeling of Thermodynamics of Catalysts and Bulk Materials

When and Where

Apr 26, 2024
4:00pm - 4:30pm

Room 320, Level 3, Summit

Presenter

Co-Author(s)

Daniel Schwalbe-Koda1

UCLA1

Abstract

Daniel Schwalbe-Koda1

UCLA1
Recent advances in machine learning (ML) interatomic potentials (IPs) allow density functional theory (DFT) calculations to be bypassed with models that balance high accuracy and relatively low computational cost. However, MLIPs can be unreliable in regions of the configuration space not represented in the training data, which often hinders their use as universal predictors when modeling high-complexity systems. In this talk, I will describe how understanding robust generalization in ML can improve the development of next-generation ML models for materials simulation. First, I will demonstrate how extrapolation in atomistic systems can be rigorously defined in a model-free approach, thus without surrogate metrics such as variance of predictions. Then, I will describe how deep learning theory can be used to improve the generalization of MLIPs. These results are used to model several problems in materials simulation, from the thermodynamic of phase transformations to coverage effects in catalysis. In combination with automated workflows for combinatorial data generation, robustness in ML models can help drive the field towards the development of universal MLIPs towards length and time scales not accessible by ground truth calculations.

Symposium Organizers

Raymundo Arroyave, Texas A&M Univ
Elif Ertekin, University of Illinois at Urbana-Champaign
Rodrigo Freitas, Massachusetts Institute of Technology
Aditi Krishnapriyan, UC Berkeley

Publishing Alliance

MRS publishes with Springer Nature