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CrystalFormer-CSP: Thinking Fast and Slow for Crystal Structure Prediction

Published: December 20, 2025 | arXiv ID: 2512.18251v1

By: Zhendong Cao, Shigang Ou, Lei Wang

Crystal structure prediction is a fundamental problem in materials science. We present CrystalFormer-CSP, an efficient framework that unifies data-driven heuristic and physics-driven optimization approaches to predict stable crystal structures for given chemical compositions. The approach combines pretrained generative models for space-group-informed structure generation and a universal machine learning force field for energy minimization. Reinforcement fine-tuning can be employed to further boost the accuracy of the framework. We demonstrate the effectiveness of CrystalFormer-CSP on benchmark problems and showcase its usage via web interface and language model integration.

Category
Condensed Matter:
Materials Science