We introduce a workflow for data-efficient on-the-fly finetuning of foundational neural network potentials with enhanced trustworthiness by harnessing predictive uncertainty estimation extracted from a Bayesian transfer learning approach.
Rensmeyer et al. (Thu,) studied this question.