AI RESEARCH
CoCoDA: Co-evolving Compositional DAG for Tool-Augmented Agents
arXiv CS.AI
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ArXi:2605.08399v1 Announce Type: new Tool-augmented language models can extend small language models with external executable skills, but scaling the tool library creates a coupled challenge: the library must evolve with the planner as new reusable subroutines emerge, while retrieval from the growing library must remain within a fixed context budget. Existing tool-use and skill-library methods typically treat tools as flat or text-indexed memories, causing prompt cost to grow with library size and obscuring the typed, compositional structure of executable code.