Mol-Instructions introduces a dataset designed to improve LLMs' understanding and prediction capabilities in biomolecular studies. It covers molecule-oriented, protein-oriented, and biomolecular text instructions, aiming to revolutionize biomolecular research.
Large language models have shown potential in biomolecular studies, but the lack of specialized datasets has been a barrier. Mol-Instructions addresses this gap by offering diverse and high-quality instructions across various tasks related to molecules, proteins, and bioinformatics.
The dataset construction involves human-AI collaboration for task descriptions, information derivation from existing data sources, template-based conversion of biological data into textual format, and rigorous quality control measures.
Performance analysis shows that LLMs trained with Mol-Instructions outperform baseline models in predicting molecular properties, generating valid molecules based on specific instructions, and understanding protein characteristics through textual descriptions.
Future work includes enriching Mol-Instructions with more task types and modalities to meet evolving research needs and improving LLMs' understanding of the complex language of biomolecules.
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by Yin Fang,Xia... um arxiv.org 03-05-2024
https://arxiv.org/pdf/2306.08018.pdfTiefere Fragen