fairydance/molexar-10m-omni
https://huggingface.co/fairydance/molexar-10m-omniMolexar-10M Omni is the universal multi-condition model for Molexar, a unified multimodal molecular foundation model for drug design. It starts from fairydance/molexar-10m-base and is supervised fine-tuned to generate Fragment-SELFIES molecules under scalar molecular-property,…
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