TL;DR
CLOUD is a scalable, physics-informed transformer model trained on millions of crystal structures that accurately predicts various material properties and integrates physical principles for thermodynamic consistency.
Contribution
Introduces CLOUD, a novel transformer-based framework with a symmetry-aware encoding, enabling scalable, accurate, and physically grounded crystal property predictions.
Findings
Pre-trained on over six million structures for broad property prediction.
Achieves competitive accuracy across multiple material property tasks.
Demonstrates thermodynamic consistency in temperature-dependent property modeling.
Abstract
The prediction of crystal properties is essential for understanding structure-property relationships and accelerating the discovery of functional materials. However, conventional approaches relying on experimental measurements or density functional theory (DFT) calculations are often resource-intensive, limiting their scalability. Machine learning (ML) models offer a promising alternative by learning complex structure-property relationships from data, enabling faster predictions. Yet, existing ML models often rely on labeled data, adopt representations that poorly capture essential structural characteristics, and lack integration with physical principles--factors that limit their generalizability and interpretability. Here, we introduce CLOUD (Crystal Language mOdel for Unified and Differentiable materials modeling), a transformer-based framework trained on a novel Symmetry-Consistent…
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Taxonomy
MethodsADaptive gradient method with the OPTimal convergence rate
