Generalization of Graph-Based Active Learning Relaxation Strategies Across Materials
Although density functional theory (DFT) has aided in accelerating the discovery of new materials, such calculations are computationally expensive, especially for high-throughput efforts. This has prompted an explosion in exploration of machine learning assisted techniques to improve the computation...
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Zusammenfassung: | Although density functional theory (DFT) has aided in accelerating the
discovery of new materials, such calculations are computationally expensive,
especially for high-throughput efforts. This has prompted an explosion in
exploration of machine learning assisted techniques to improve the
computational efficiency of DFT. In this study, we present a comprehensive
investigation of the broader application of Finetuna, an active learning
framework to accelerate structural relaxation in DFT with prior information
from Open Catalyst Project pretrained graph neural networks. We explore the
challenges associated with out-of-domain systems: alcohol ($C_{>2}$) on metal
surfaces as larger adsorbates, metal-oxides with spin polarization, and
three-dimensional (3D) structures like zeolites and metal-organic-frameworks.
By pre-training machine learning models on large datasets and fine-tuning the
model along the simulation, we demonstrate the framework's ability to conduct
relaxations with fewer DFT calculations. Depending on the similarity of the
test systems to the training systems, a more conservative querying strategy is
applied. Our best-performing Finetuna strategy reduces the number of DFT
single-point calculations by 80% for alcohols and 3D structures, and 42% for
oxide systems. |
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DOI: | 10.48550/arxiv.2311.01987 |