AILGMay 13

Harnessing Agentic Evolution

arXiv:2605.1382154.02 citations
Predicted impact top 4% in AI · last 90 daysOriginality Highly original
AI Analysis

For researchers and practitioners using evolutionary methods to improve programs or workflows, AEvo provides a unified interface to leverage accumulated evidence for long-horizon search, addressing drift and rigidity in existing approaches.

AEvo introduces a meta-editing framework that treats agentic evolution as an interactive environment, using accumulated evidence to edit the procedure or agent context controlling future evolution. It outperforms five baselines with a 26% relative improvement on agentic and reasoning benchmarks and achieves state-of-the-art on three open-ended optimization tasks.

Agentic evolution has emerged as a powerful paradigm for improving programs, workflows, and scientific solutions by iteratively generating candidates, evaluating them, and using feedback to guide future search. However, existing methods are typically instantiated either as fixed hand-designed procedures that are modular but rigid, or as general-purpose agents that flexibly integrate feedback but can drift in long-horizon evolution. Both forms accumulate rich evidence over time, including candidates, feedback, traces, and failures, yet lack a stable interface for organizing this evidence and revising the mechanism that drives future evolution. We address this limitation by formulating agentic evolution as an interactive environment, where the accumulated evolution context serves as a process-level state. We introduce AEvo, a harnessed meta-editing framework in which a meta-agent observes this state and acts not by directly proposing the next candidate, but by editing the procedure or agent context that controls future evolution. This unified interface enables AEvo to steer both procedure-based and agent-based evolution, making accumulated evidence actionable for long-horizon search. Empirical evaluations on agentic and reasoning benchmarks show that AEvo outperforms five evolution baselines, achieving a 26 relative improvement over the strongest baseline. Across three open-ended optimization tasks, AEvo further outperforms four evolution baselines and achieves state-of-the-art performance under the same iteration budget.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes