SkillGen: Verified Inference-Time Agent Skill Synthesis
Yuchen Ma, Yue Huang, Han Bao, Haomin Zhuang, Swadheen Shukla, Michel Galley, Xiangliang Zhang, Stefan Feuerriegel

TL;DR
SkillGen is a multi-agent framework that synthesizes verifiable, human-readable skills from agent trajectories, improving performance and transferability without retraining.
Contribution
It introduces a novel contrastive induction method and intervention-based verification to automatically generate and refine reusable agent skills.
Findings
SkillGen improves performance across various agents and datasets.
It outperforms existing skill-generation methods.
Generated skills transfer across different models.
Abstract
Skills are a promising way to improve LLM agent capabilities without retraining, while keeping the added procedure reusable and controllable. However, high-quality skills are still largely written by hand. We introduce SkillGen, a multi-agent framework that synthesizes a single auditable skill from trajectories generated by a base agent. The output is a human-readable artifact that can be inspected before use. Rather than merely summarizing trajectories, SkillGen leverages contrastive induction over both successful and failed trajectories to identify reusable success patterns, recurring failure modes, and behaviors that appear in nearby successes but are missing from failures. SkillGen then generates candidate skills and iteratively refines the skill. A key novelty in SkillGen is that we model agent skills as interventions to empirically verify the net effect of skills on the overall…
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