Trace2Skill: Distill Trajectory-Local Lessons into Transferable Agent Skills
Jingwei Ni, Yihao Liu, Xinpeng Liu, Yutao Sun, Mengyu Zhou, Pengyu Cheng, Dexin Wang, Erchao Zhao, Xiaoxi Jiang, Guanjun Jiang

TL;DR
Trace2Skill is a novel framework that analyzes diverse execution experiences to distill comprehensive, transferable agent skills, significantly enhancing performance across various domains without additional training.
Contribution
It introduces a holistic, parallel analysis approach for skill extraction, enabling the creation of generalizable, conflict-free agent skills from trajectory data.
Findings
Skills evolved by Trace2Skill transfer across LLM scales.
Significant performance improvements on WikiTableQuestions.
Skills generalize to out-of-distribution settings.
Abstract
Equipping Large Language Model (LLM) agents with domain-specific skills is critical for tackling complex tasks. Yet, manual authoring creates a severe scalability bottleneck. Conversely, automated skill generation often yields fragile or fragmented results because it either relies on shallow parametric knowledge or sequentially overfits to non-generalizable trajectory-local lessons. To overcome this, we introduce Trace2Skill, a framework that mirrors how human experts author skills: by holistically analyzing broad execution experience before distilling it into a single, comprehensive guide. Instead of reacting sequentially to individual trajectories, Trace2Skill dispatches a parallel fleet of sub-agents to analyze a diverse pool of executions. It extracts trajectory-specific lessons and hierarchically consolidates them into a unified, conflict-free skill directory via inductive…
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