skills/skillxiv-v0.0.2-claude-opus-4.6/co-evolving-critics-agent/SKILL.md
No More Stale Feedback: Co-Evolving Critics for Open-World Agent Learning. From arXiv:2601.06794
npx skillsauth add ADu2021/skillXiv co-evolving-critics-agentInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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This skill implements the approach from the paper: No More Stale Feedback: Co-Evolving Critics for Open-World Agent Learning
Implements advanced techniques for agent reasoning, search, and learning described in arXiv:2601.06794.
[To be populated from full paper analysis]
testing
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Enable LLM agents to improve continuously during deployment by constructing structured experience libraries through self-reflection on successes and failures—achieving 23% improvement on reasoning without gradient-based parameter updates or external training.