AI RESEARCH

What an Autonomous Agent Discovers About Molecular Transformer Design: Does It Transfer?

arXiv CS.AI

ArXi:2603.28015v1 Announce Type: new Deep learning models for drug-like molecules and proteins overwhelmingly reuse transformer architectures designed for natural language, yet whether molecular sequences benefit from different designs has not been systematically tested. We deploy autonomous architecture search via an agent across three sequence types (SMILES, protein, and English text as control), running 3,106 experiments on a single GPU. For SMILES, architecture search is counterproductive: tuning learning rates and schedules alone outperforms the full search (p = 0.001.