Transfer learning for chemically accurate interatomic neural network potentials
Zaverkin, Viktor, Holzmüller, David, Bonfirraro, Luca, Kästner, Johannes
Developing machine learning-based interatomic potentials from ab-initio electronic structure methods remains a challenging task for computational chemistry and materials science. This work studies the capability of transfer learning, in particular discriminative fine-tuning, for efficiently generating chemically accurate interatomic neural network potentials on organic molecules from the MD17 and ANI data sets. We show that pre-training the network parameters on data obtained from density functional calculations considerably improves the sample efficiency of models trained on more accurate ab-initio data. Additionally, we show that fine-tuning with energy labels alone can suffice to obtain accurate atomic forces and run large-scale atomistic simulations, provided a well-designed fine-tuning data set. We also investigate possible limitations of transfer learning, especially regarding the design and size of the pre-training and fine-tuning data sets. Finally, we provide GM-NN potentials pre-trained and fine-tuned on the ANI-1x and ANI-1ccx data sets, which can easily be fine-tuned on and applied to organic molecules.
Jan-28-2023
- Country:
- North America > United States
- California > San Diego County > San Diego (0.04)
- Europe > Germany
- Baden-Württemberg > Stuttgart Region > Stuttgart (0.05)
- North America > United States
- Genre:
- Research Report (1.00)
- Industry:
- Health & Medicine (0.32)
- Technology: