pnnl/SNAP
- Pacific Northwest National Laboratory
In this work, we detail two uncertainty quantification (UQ) methods that provide complementary information. Readout ensembling, by finetuning only the readout layers of an ensemble of foundation models, provides information about model uncertainty. Amending the final readout layer to predict upper and lower quantiles replaces point predictions with distributional predictions, which provide information about uncertainty within the underlying training data. We demonstrate our approach with the MACE-MP-0 model, applying UQ to both the foundation model and a series of finetuned models. The uncertainties produced by the ensemble and quantile methods are demonstrated to be distinct measures by which the quality of the NNP output can be judged.
- Short Name / Acronym:
- SNAP
- Site Accession Number:
- Battelle IPID 33288-E
- Software Type:
- Scientific
- License(s):
- BSD 2-clause "Simplified" License
- Research Organization:
- Pacific Northwest National Laboratory
- Sponsoring Organization:
- US DOEPrimary Award/Contract Number:AC05-76RL01830
- DOE Contract Number:
- AC05-76RL01830
- Code ID:
- 153158
- OSTI ID:
- code-153158
- Country of Origin:
- United States
Similar Records
Uncertainty quantification for neural network potential foundation models
AL-ASMR: Active Learning of Atomistic Surrogate Models for Rare Events
Journal Article
·
Wed Apr 23 20:00:00 EDT 2025
· npj Computational Materials
·
OSTI ID:2562728
AL-ASMR: Active Learning of Atomistic Surrogate Models for Rare Events
Software
·
Sun Aug 27 20:00:00 EDT 2023
·
OSTI ID:code-112533