the-matter-lab/clari
https://huggingface.co/the-matter-lab/clariThis repository contains data and checkpoints for the paper: Fast Organic Crystal Structure Prediction with Unit Cell Flow Matching (arXiv).
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- HuggingFace — the-matter-lab/clari
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