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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.

Abstract

Existing chemical understanding tasks primarily rely on static molecular representations, limiting their ability to model inherently dynamic phenomena such as bond breaking or conformational changes, which are essential for a chemist to understand chemical reactions. To address this gap, we introduce Chemical Dynamics Understanding (ChemDU), a new task that translates 4D molecular trajectories into interpretable natural-language explanations. ChemDU focuses on fundamental dynamic scenarios, including gas-phase and catalytic reactions, and requires models to reason about key events along molecular trajectories, such as bond formation and dissociation, and to generate coherent, mechanistically grounded narratives. To benchmark this capability, we construct Chem4DBench, the first dataset pairing 4D molecular trajectories with expert-authored explanations across these settings. We further propose Chem4DLLM, a unified model that integrates an equivariant graph encoder with a pretrained large language model to explicitly capture molecular geometry and rotational dynamics. We hope that ChemDU, together with Chem4DBench and Chem4DLLM, will stimulate further research in dynamic chemical understanding and multimodal scientific reasoning.