deal

Data-efficient active learning for machine learning interatomic potential

Github: luigibonati/DEAL

Publication: Data efficient machine learning potentials for modeling catalytic reactivity via active learning and enhanced sampling (Perego & Bonati, 2024)


DEAL selects non-redundant structures from atomistic trajectories via Sparse Gaussian Processes (SGP), to be used to train machine-learning interatomic potentials.

Highlights

  • Select structures based on SGP predictive variance.
  • Analyze selected structures (e.g. along the trajectory or as a function of a CV)
  • Interactive visualization using chemiscope

References

2024

  1. npj Comput. Mater.
    2024-npj-deal.png
    Data efficient machine learning potentials for modeling catalytic reactivity via active learning and enhanced sampling
    Simone Perego and Luigi Bonati
    npj Computational Materials, Dec 2024