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Hauptverfasser: Li, Hao, Mu, Chunjiang, Chen, Jianhao, Ren, Siyue, Cui, Zhiyao, Zhang, Yiqun, Bai, Lei, Hu, Shuyue
Format: Preprint
Veröffentlicht: 2026
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Online-Zugang:https://arxiv.org/abs/2603.02176
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author Li, Hao
Mu, Chunjiang
Chen, Jianhao
Ren, Siyue
Cui, Zhiyao
Zhang, Yiqun
Bai, Lei
Hu, Shuyue
author_facet Li, Hao
Mu, Chunjiang
Chen, Jianhao
Ren, Siyue
Cui, Zhiyao
Zhang, Yiqun
Bai, Lei
Hu, Shuyue
contents The rapid proliferation of Claude agent skills has raised the central question of how to effectively leverage, manage, and scale the agent skill ecosystem. In this paper, we propose AgentSkillOS, the first principled framework for skill selection, orchestration, and ecosystem-level management. AgentSkillOS comprises two stages: (i) Manage Skills, which organizes skills into a capability tree via node-level recursive categorization for efficient discovery; and (ii) Solve Tasks, which retrieves, orchestrates, and executes multiple skills through DAG-based pipelines. To evaluate the agent's ability to invoke skills, we construct a benchmark of 30 artifact-rich tasks across five categories: data computation, document creation, motion video, visual design, and web interaction. We assess the quality of task outputs using LLM-based pairwise evaluation, and the results are aggregated via a Bradley-Terry model to produce unified quality scores. Experiments across three skill ecosystem scales (200 to 200K skills) show that tree-based retrieval effectively approximates oracle skill selection, and that DAG-based orchestration substantially outperforms native flat invocation even when given the identical skill set. Our findings confirm that structured composition is the key to unlocking skill potential. Our GitHub repository is available at:https://github.com/ynulihao/AgentSkillOS.
format Preprint
id arxiv_https___arxiv_org_abs_2603_02176
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Organizing, Orchestrating, and Benchmarking Agent Skills at Ecosystem Scale
Li, Hao
Mu, Chunjiang
Chen, Jianhao
Ren, Siyue
Cui, Zhiyao
Zhang, Yiqun
Bai, Lei
Hu, Shuyue
Computation and Language
The rapid proliferation of Claude agent skills has raised the central question of how to effectively leverage, manage, and scale the agent skill ecosystem. In this paper, we propose AgentSkillOS, the first principled framework for skill selection, orchestration, and ecosystem-level management. AgentSkillOS comprises two stages: (i) Manage Skills, which organizes skills into a capability tree via node-level recursive categorization for efficient discovery; and (ii) Solve Tasks, which retrieves, orchestrates, and executes multiple skills through DAG-based pipelines. To evaluate the agent's ability to invoke skills, we construct a benchmark of 30 artifact-rich tasks across five categories: data computation, document creation, motion video, visual design, and web interaction. We assess the quality of task outputs using LLM-based pairwise evaluation, and the results are aggregated via a Bradley-Terry model to produce unified quality scores. Experiments across three skill ecosystem scales (200 to 200K skills) show that tree-based retrieval effectively approximates oracle skill selection, and that DAG-based orchestration substantially outperforms native flat invocation even when given the identical skill set. Our findings confirm that structured composition is the key to unlocking skill potential. Our GitHub repository is available at:https://github.com/ynulihao/AgentSkillOS.
title Organizing, Orchestrating, and Benchmarking Agent Skills at Ecosystem Scale
topic Computation and Language
url https://arxiv.org/abs/2603.02176