Saved in:
Bibliographic Details
Main Authors: He, Zelin, Lin, Haotian, Han, Boran, Zhu, Wei, Fang, Haoyang, Wang, Bernie, Zhu, Xuan, Li, Runze, Reimherr, Matthew
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2606.01619
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866918534519455744
author He, Zelin
Lin, Haotian
Han, Boran
Zhu, Wei
Fang, Haoyang
Wang, Bernie
Zhu, Xuan
Li, Runze
Reimherr, Matthew
author_facet He, Zelin
Lin, Haotian
Han, Boran
Zhu, Wei
Fang, Haoyang
Wang, Bernie
Zhu, Xuan
Li, Runze
Reimherr, Matthew
contents Agentic reinforcement learning (RL) enables LLM agents to improve continuously from environment rewards, yet the resulting policies do not systematically accumulate reusable strategies that generalize across tasks. Modular skills can provide such reusable strategies, yet existing skill-augmented RL methods decouple skill creation from policy optimization, risking adopting skills that conflict with the evolving policy. Inspired by Anthropic's Skill Creator, we introduce ReSkill, an RL-in-the-loop skill creation framework that reconciles skill evolution with policy learning. ReSkill exploits the group-wise structure of GRPO to naturally embed three mechanisms with only marginal additional overhead: (1) an assertion-driven skill creator that diagnoses failures from past experience and proposes conditional, trigger-based skill revisions; (2) within-group rollout sampling that enables controlled comparison of skill versions, capturing which version best supports the policy's ongoing learning; and (3) Thompson Sampling with adaptive discounting to balance exploration and exploitation in skill version selection as the policy evolves. Across several domains, ReSkill consistently outperforms existing memory and skill-based RL methods, with the largest gains on unseen tasks. Analysis of the skill lifecycle shows skills being automatically created, tested, refined, and pruned as the policy improves, demonstrating reconciled skill-policy co-evolution.
format Preprint
id arxiv_https___arxiv_org_abs_2606_01619
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle ReSkill: Reconciling Skill Creation with Policy Optimization in Agentic RL
He, Zelin
Lin, Haotian
Han, Boran
Zhu, Wei
Fang, Haoyang
Wang, Bernie
Zhu, Xuan
Li, Runze
Reimherr, Matthew
Artificial Intelligence
Machine Learning
Agentic reinforcement learning (RL) enables LLM agents to improve continuously from environment rewards, yet the resulting policies do not systematically accumulate reusable strategies that generalize across tasks. Modular skills can provide such reusable strategies, yet existing skill-augmented RL methods decouple skill creation from policy optimization, risking adopting skills that conflict with the evolving policy. Inspired by Anthropic's Skill Creator, we introduce ReSkill, an RL-in-the-loop skill creation framework that reconciles skill evolution with policy learning. ReSkill exploits the group-wise structure of GRPO to naturally embed three mechanisms with only marginal additional overhead: (1) an assertion-driven skill creator that diagnoses failures from past experience and proposes conditional, trigger-based skill revisions; (2) within-group rollout sampling that enables controlled comparison of skill versions, capturing which version best supports the policy's ongoing learning; and (3) Thompson Sampling with adaptive discounting to balance exploration and exploitation in skill version selection as the policy evolves. Across several domains, ReSkill consistently outperforms existing memory and skill-based RL methods, with the largest gains on unseen tasks. Analysis of the skill lifecycle shows skills being automatically created, tested, refined, and pruned as the policy improves, demonstrating reconciled skill-policy co-evolution.
title ReSkill: Reconciling Skill Creation with Policy Optimization in Agentic RL
topic Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2606.01619