Understanding and predicting the properties of inorganic materials is crucial for accelerating advancements in materials science and driving applications in energy, electronics and beyond. Integrating material structure data with language-based information through multimodal large language models (LLMs) offers great potential to support these efforts by enhancing human–artificial intelligence interaction. However, a key challenge lies in integrating atomic structures at full resolution into LLMs. In this work, we introduce MatterChat, a versatile structure-aware multimodal LLM that unifies material structural data and textual inputs into a single cohesive model. MatterChat uses a bridging module to effectively align a pretrained universal machine learning interatomic potential with a pretrained LLM, reducing training costs and enhancing flexibility. Our results demonstrate that MatterChat greatly improves performance in material property prediction and human–artificial intelligence interaction, surpassing general-purpose LLMs such as GPT-4. We also demonstrate its usefulness in applications such as more advanced scientific reasoning and step-by-step material synthesis. Tang et al. introduce MatterChat, a multimodal framework effectively integrating material structural data with large language models. It achieves high-precision property predictions and provides interpretable reasoning to accelerate materials discovery.
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Yingheng Tang
Lawrence Berkeley National Laboratory
Wenbin Xu
Lawrence Berkeley National Laboratory
Jie Cao
Nature Machine Intelligence
University of California, Berkeley
Lawrence Berkeley National Laboratory
University of Utah
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Tang et al. (Fri,) studied this question.
synapsesocial.com/papers/69edad274a46254e215b4d91 — DOI: https://doi.org/10.1038/s42256-026-01214-y