AI RESEARCH

Generative Chemical Language Models for Energetic Materials Discovery

arXiv CS.AI

ArXi:2604.03304v1 Announce Type: cross The discovery of new energetic materials remains a pressing challenge hindered by limited availability of high-quality data. To address this, we have developed generative molecular language models that have been pretrained on extensive chemical data and then fine-tuned with curated energetic materials datasets. This transfer-learning strategy extends the chemical language model capabilities beyond the pharmacological space in which they have been predominantly developed, offering a framework applicable to other data-spare discovery problems.