Orb: A Fast, Scalable Neural Network Potential
About
We introduce Orb, a family of universal interatomic potentials for atomistic modelling of materials. Orb models are 3-6 times faster than existing universal potentials, stable under simulation for a range of out of distribution materials and, upon release, represented a 31% reduction in error over other methods on the Matbench Discovery benchmark. We explore several aspects of foundation model development for materials, with a focus on diffusion pretraining. We evaluate Orb as a model for geometry optimization, Monte Carlo and molecular dynamics simulations.
Mark Neumann, James Gin, Benjamin Rhodes, Steven Bennett, Zhiyi Li, Hitarth Choubisa, Arthur Hussey, Jonathan Godwin• 2024
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Stability prediction | Matbench-Discovery unique structure prototypes | F1 Score76.5 | 26 | |
| Density prediction | Materials Project crystals | R20.034 | 2 | |
| Volume per atom prediction | Materials Project crystals (Single split) | R2 (Geometry)0.034 | 2 | |
| Band gap prediction | Materials Project crystals (Single split) | R2 (Geometry)0.206 | 2 | |
| Formation energy prediction | Materials Project crystals | R2 (Geometry)0.18 | 2 |
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