BOOM: Benchmarking Out-of-Distribution Molecular Property Predictions of Machine Learning Models
Abstract
Data-driven molecular discovery leverages artificial intelligence/machine learning (AI/ML) and generative modeling to filter and design novel molecules. Discovering novel molecules requires accurate out-of-distribution (OOD) predictions, but ML models struggle to generalize OOD. Currently, no systematic benchmarks exist for molecular OOD prediction tasks. We present BOOM, $\textbf{b}$enchmarks for $\textbf{o}$ut-$\textbf{o}f$-$\textbf{d}$istribution $\textbf{m}$olecular property predictions: a chemically-informed benchmark for OOD performance on common molecular property prediction tasks. We evaluate over 150 model-task combinations to benchmark deep learning models on OOD performance. Overall, we find that no existing model achieves strong generalization across all tasks: even the top-performing model exhibited an average OOD error 3$\times$ higher than in-distribution. Current chemical foundation models do not show strong OOD extrapolation, while models with high inductive bias can perform well on OOD tasks with simple, specific properties. We perform extensive ablation experiments, highlighting how data generation, pre-training, hyperparameter optimization, model architecture, and molecular representation impact OOD performance. Developing models with strong OOD generalization is a new frontier challenge in chemical ML. This open-source benchmark is available at https://github.com/FLASK-LLNL/BOOM
Cite
Text
Antoniuk et al. "BOOM: Benchmarking Out-of-Distribution Molecular Property Predictions of Machine Learning Models." Advances in Neural Information Processing Systems, 2025.Markdown
[Antoniuk et al. "BOOM: Benchmarking Out-of-Distribution Molecular Property Predictions of Machine Learning Models." Advances in Neural Information Processing Systems, 2025.](https://mlanthology.org/neurips/2025/antoniuk2025neurips-boom/)BibTeX
@inproceedings{antoniuk2025neurips-boom,
title = {{BOOM: Benchmarking Out-of-Distribution Molecular Property Predictions of Machine Learning Models}},
author = {Antoniuk, Evan R and Zaman, Shehtab and Ben-Nun, Tal and Li, Peggy and Diffenderfer, James and Sahin, Busra and Smolenski, Obadiah Hersh and Grethel, Everett and Hsu, Tim and Hiszpanski, Anna and Chiu, Kenneth and Kailkhura, Bhavya and Van Essen, Brian},
booktitle = {Advances in Neural Information Processing Systems},
year = {2025},
url = {https://mlanthology.org/neurips/2025/antoniuk2025neurips-boom/}
}