AI RESEARCH
ProtoCycle: Reflective Tool-Augmented Planning for Text-Guided Protein Design
arXiv CS.AI
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ArXi:2604.16896v1 Announce Type: cross Designing proteins that satisfy natural language functional requirements is a central goal in protein engineering. A straightforward baseline is to fine-tune generic instruction-tuned LLMs as direct text-to-sequence generators, but this is data- and compute-hungry. With limited supervision, LLMs can produce coherent plans in text yet fail to reliably realize them as sequences. This plan-execute gap motivates ProtoCycle, an agentic framework for protein design that uses LLMs primarily to drive a multi-round, feedback-driven decision cycle.