Chem4DLLM: 4D Multimodal LLMs for Chemical Dynamics Understanding
arXiv cs.LG / 3/13/2026
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Key Points
- ChemDU is introduced as a new task to translate 4D molecular trajectories into interpretable natural-language explanations of dynamic chemical processes.
- The work defines Chem4DBench, the first dataset pairing 4D trajectories with expert-authored explanations across gas-phase and catalytic reactions.
- Chem4DLLM is proposed as a unified model that combines an equivariant graph encoder with a pretrained large language model to capture molecular geometry and rotational dynamics.
- The authors hope ChemDU, Chem4DBench, and Chem4DLLM will spur further research in dynamic chemical understanding and multimodal scientific reasoning.
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