DS1 spectrogram: Gödel Agent: A Self-Referential Agent Framework for Recursive
  Self-Improvement

Gödel Agent: A Self-Referential Agent Framework for Recursive Self-Improvement

2410.04444

Authors

William Yang Wang,Li Lin,Xunjian Yin,Xinyi Wang,Liangming Pan

Abstract

The rapid advancement of large language models (LLMs) has significantly enhanced the capabilities of AI-driven agents across various tasks. However, existing agentic systems, whether based on fixed pipeline algorithms or pre-defined meta-learning frameworks, cannot search the whole agent design space due to the restriction of human-designed components, and thus might miss the globally optimal agent design.

In this paper, we introduce Gödel Agent, a self-evolving framework inspired by the Gödel machine, enabling agents to recursively improve themselves without relying on predefined routines or fixed optimization algorithms. Gödel Agent leverages LLMs to dynamically modify its own logic and behavior, guided solely by high-level objectives through prompting.

Experimental results on mathematical reasoning and complex agent tasks demonstrate that implementation of Gödel Agent can achieve continuous self-improvement, surpassing manually crafted agents in performance, efficiency, and generalizability.

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