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News/SkillDAG: Self-Evolving Typed Skill Graphs for LLM Skill Selection at Scale
arxiv
PublishedJune 3, 2026 at 4:00 AM
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SkillDAG: Self-Evolving Typed Skill Graphs for LLM Skill Selection at Scale

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arXiv:2606.03056v1 Announce Type: new Abstract: As LLM agents adopt large skill libraries, selecting the right subset becomes a structural problem rather than a similarity-matching one: skills depend on, conflict with, specialize, or duplicate one another, a structure invisible to both full enumerat

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