AI RESEARCH
More Skills, Worse Agents? Skill Shadowing Degrades Performance When Expanding Skill Libraries
arXiv CS.AI
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ArXi:2605.24050v1 Announce Type: cross Skill libraries allow LLM agents to load task-specific instructions on demand, letting non-expert users solve domain-specific tasks through natural language without knowing which skills exist or how they work. However, performance degrades as libraries grow -- by up to 21\% when scaling from a small set of helpful skills to a 202-skill library. In this work, we formulate this performance degradation as the pass rate drop between loading a library of known-helpful skills and the full library.