Evaluating Machine Learned Inter-Atomic Potentials for a Practical Simulation Workflow
Richard Strunk · Karnik Ram · Daniel Cremers
Abstract
MLIPs are a promising paradigm in atomistic simulation, potentially offering the accuracy of ab-initio methods at the speed of empirical potentials. In this blog post, we give an overview of recent MLIP architectures, followed by an evaluation on a practical CO2 adsorption simulation. We find that as of today these models, though promising, are far from plug-and-play, requiring significant engineering effort to operate within established simulation frameworks, while also failing to produce physically consistent results.
Successful Page Load