Memento-Skills: Let Agents Design Agents
Huichi Zhou, Siyuan Guo, Anjie Liu, Zhongwei Yu, Ziqin Gong, Bowen Zhao, Zhixun Chen, Menglong Zhang, Yihang Chen, Jinsong Li, Runyu Yang, Qiangbin Liu, Xinlei Yu, Jianmin Zhou, Na Wang, Chunyang Sun, Jun Wang

TL;DR
Memento-Skills is a continually-learnable, agent-designing system that autonomously constructs and improves task-specific agents through experience without updating LLM parameters, using a memory-based reinforcement learning framework.
Contribution
It introduces a novel framework for agents to design and refine other agents end-to-end via external skills and prompts, enabling continual learning without parameter updates.
Findings
Achieved 26.2% improvement on the General AI Assistants benchmark.
Achieved 116.2% improvement on Humanity's Last Exam.
Demonstrated sustained performance gains through iterative skill refinement.
Abstract
We introduce \emph{Memento-Skills}, a generalist, continually-learnable LLM agent system that functions as an \emph{agent-designing agent}: it autonomously constructs, adapts, and improves task-specific agents through experience. The system is built on a memory-based reinforcement learning framework with \emph{stateful prompts}, where reusable skills (stored as structured markdown files) serve as persistent, evolving memory. These skills encode both behaviour and context, enabling the agent to carry forward knowledge across interactions. Starting from simple elementary skills (like Web search and terminal operations), the agent continually improves via the \emph{Read--Write Reflective Learning} mechanism introduced in \emph{Memento~2}~\cite{wang2025memento2}. In the \emph{read} phase, a behaviour-trainable skill router selects the most relevant skill conditioned on the current…
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Taxonomy
TopicsTopic Modeling · Multimodal Machine Learning Applications · Web Data Mining and Analysis
