Accurate yet transferable machine-learning interatomic potentials (MLIPs) are essential for accelerating materials and chemical discovery. However, most universal MLIPs overfit to narrow datasets or computational protocols, limiting their reliability across chemical and functional domains. We introduce a transferable multi-domain training strategy that jointly optimizes universal and task-specific parameters through selective regularization, coupled with a domain-bridging set (DBS) that aligns potential-energy surfaces across datasets. Systematic ablation experiments show that small DBS fractions (0.1%) and targeted regularization synergistically enhance out-of-distribution generalization while preserving in-domain fidelity. Trained on fifteen open databases spanning molecules, crystals, and surfaces, our model, SevenNet-Omni, achieves state-of-the-art cross-domain accuracy, including adsorption-energy errors below 0.06 eV on metallic surfaces and 0.1 eV on metal-organic frameworks. Despite containing only 0.5% r2SCAN data, SevenNet-Omni reproduces high-fidelity r2SCAN energetics, demonstrating effective cross-functional transfer from large PBE datasets. This framework offers a scalable route toward universal, transferable MLIPs that bridge quantum-mechanical fidelities and chemical domains.
@article{arxiv.2510.11241,
title = {Optimizing Cross-Domain Transfer for Universal Machine Learning Interatomic Potentials},
author = {Jaesun Kim and Jinmu You and Yutack Park and Yunsung Lim and Yujin Kang and Jisu Kim and Haekwan Jeon and Suyeon Ju and Deokgi Hong and Seung Yul Lee and Saerom Choi and Yongdeok Kim and Jae W. Lee and Seungwu Han},
journal= {arXiv preprint arXiv:2510.11241},
year = {2025}
}
Comments
23 pages, 5 figures, 2 tables, Supplementary information included as ancillary file (+32 pages)