Section 01
MPPReasoner: Injecting Chemical Reasoning into Multimodal Large Models to Reshape the Paradigm of Molecular Property Prediction (Introduction)
In the fields of drug discovery and materials science, molecular property prediction is a key link in accelerating R&D processes. Traditional machine learning methods rely on large amounts of labeled data, while general-purpose large language models lack professional chemical reasoning capabilities. MPPReasoner is built on Qwen2.5-VL-7B-Instruct, systematically integrating chemical reasoning into multimodal large models through a two-stage training framework, and has shown exceptional performance on multiple benchmark datasets, opening up a new technical path for molecular property prediction.