Escher-Loop: Mutual Evolution by Closed-Loop Self-Referential Optimization 文章

ArXiv CS.AI2026-05-28NEWSen作者: Ziyang Liu, Xinyan Guo, Xuchen Wei, Han Hao, Liu Yang

摘要

arXiv:2604.23472v2 Announce Type: replace Abstract: While recent autonomous agents demonstrate impressive capabilities, they predominantly rely on manually scripted workflows and handcrafted heuristics, inherently limiting their potential for open-ended improvement. To address this, we propose Escher-Loop, a fully closed-loop framework that operationalizes the mutual evolution of two distinct populations: Task Agents that solve concrete problems, and Optimizer Agents that recursively refine both the task agents and themselves. To sustain this self-referential evolution, we propose a dynamic benchmarking mechanism that seamlessly reuses the empirical scores of newly generated task agents as relative win-loss signals to update optimizers' scores. This mechanism leverages the evolution of task agents as an inherent signal to drive the evaluation and refinement of optimizers without additional overhead.

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