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[CS.AI] MetaSkill-Evolve: Recursive Self-Improvement in LLM Agents

Published at: 2026-07-08 22:00 Last updated: 2026-07-09 03:23
#algorithm #AI #Machine Learning

Abstract

Recent LLM agents tackle increasingly long-horizon, open-ended tasks, and external skills, reusable procedural knowledge supplied to the agent, further extend this capability. However, a fixed, hand-authored skill is rarely optimal, and cannot adapt to the diversity of tasks an agent encounters. Self-improving agents address this by rewriting their own skill files from execution traces, yielding meaningful gains on challenging benchmarks. Yet such self-evolution remains non-recursive: it improves only the task skill (what the agent does) while the improvement procedure (how it improves) is authored once and held fixed.

We introduce MetaSkill-Evolve, a two-timescale framework that makes agentic skill improvement recursive: every branch carries both a task skill $s$ and a branch-local meta-skill $m=(\psi,\sigma,\alpha,\pi,\varepsilon)$ whose five components parameterise the Analyzer, Retriever, Allocator, Proposer, and Evolver agents of the improvement pipeline. Task skills evolve on a fast loop while the meta-skill evolves on a slower one under the same pipeline applied to itself, with no additional model or objective. With all five pipeline agents sharing a single frozen backbone, MetaSkill-Evolve outperforms no-skill, static-skill, and single-level evolution baselines on three agentic benchmarks (OfficeQA, SealQA, ALFWorld), improving held-out test accuracy over the raw backbone by +23.54, +16.09, and +1.92 points respectively.

Blogger's Review: The introduction of MetaSkill-Evolve offers a fresh perspective on self-improvement for LLM agents, effectively enhancing adaptability and performance through a recursive mechanism. This dual-timescale evolution framework significantly boosts agent performance in complex tasks, warranting further exploration and application in future research.

Original Source: https://arxiv.org/abs/2607.05297

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