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Autori principali: Liu, Dawei, Li, Zongxia, Du, Hongyang, Wu, Xiyang, Gui, Shihang, Kuang, Yongbei, Sun, Lichao
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2604.05333
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author Liu, Dawei
Li, Zongxia
Du, Hongyang
Wu, Xiyang
Gui, Shihang
Kuang, Yongbei
Sun, Lichao
author_facet Liu, Dawei
Li, Zongxia
Du, Hongyang
Wu, Xiyang
Gui, Shihang
Kuang, Yongbei
Sun, Lichao
contents Modern LLM agents increasingly rely on reusable skills, and as they interact with personal applications, web browsers, and other interfaces, skill libraries can scale to thousands of skills. Scaling to larger skill sets introduces two key challenges. First, loading the full skill set saturates the context window, driving up token costs, hallucination, and latency. Second, semantic retrieval surfaces topically relevant skills but misses their prerequisite chain of upstream and downstream skills, creating a prerequisite gap that leaves the retrieved bundle execution-incomplete. In this paper, we present Graph-of-Skills (GoS), an inference-time structural retrieval layer for large skill libraries. GoS constructs an executable skill graph offline from skill packages, then at inference time retrieves a bounded, dependency-aware skill bundle through hybrid semantic-lexical seeding, reverse-aware Personalized PageRank, and context-budgeted hydration. On SkillsBench and ALFWorld, GoS consistently delivers substantial reward improvements and token savings across three model families (Claude Sonnet 4.5, MiniMax M2.7, and GPT-5.2 Codex). On SkillsBench, GoS achieves a peak reward increase of 25.55% while reducing total tokens by 56.72% over the vanilla full skill-loading baseline using GPT-5.2 Codex. Ablations confirm this pattern across skill libraries from 200 to 2,000 skills.
format Preprint
id arxiv_https___arxiv_org_abs_2604_05333
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Graph-of-Skills: Dependency-Aware Structural Retrieval for Massive Agent Skills
Liu, Dawei
Li, Zongxia
Du, Hongyang
Wu, Xiyang
Gui, Shihang
Kuang, Yongbei
Sun, Lichao
Artificial Intelligence
Modern LLM agents increasingly rely on reusable skills, and as they interact with personal applications, web browsers, and other interfaces, skill libraries can scale to thousands of skills. Scaling to larger skill sets introduces two key challenges. First, loading the full skill set saturates the context window, driving up token costs, hallucination, and latency. Second, semantic retrieval surfaces topically relevant skills but misses their prerequisite chain of upstream and downstream skills, creating a prerequisite gap that leaves the retrieved bundle execution-incomplete. In this paper, we present Graph-of-Skills (GoS), an inference-time structural retrieval layer for large skill libraries. GoS constructs an executable skill graph offline from skill packages, then at inference time retrieves a bounded, dependency-aware skill bundle through hybrid semantic-lexical seeding, reverse-aware Personalized PageRank, and context-budgeted hydration. On SkillsBench and ALFWorld, GoS consistently delivers substantial reward improvements and token savings across three model families (Claude Sonnet 4.5, MiniMax M2.7, and GPT-5.2 Codex). On SkillsBench, GoS achieves a peak reward increase of 25.55% while reducing total tokens by 56.72% over the vanilla full skill-loading baseline using GPT-5.2 Codex. Ablations confirm this pattern across skill libraries from 200 to 2,000 skills.
title Graph-of-Skills: Dependency-Aware Structural Retrieval for Massive Agent Skills
topic Artificial Intelligence
url https://arxiv.org/abs/2604.05333