CLAIJun 3

SePO: Self-Evolving Prompt Agent for System Prompt Optimization

arXiv:2606.0446543.3
AI Analysis

This work addresses the bottleneck of hand-engineered prompt agents in system prompt optimization, offering a fully automated and generalizable approach for improving LLM agent performance.

SePO introduces a self-referential framework that optimizes both task agents' and the prompt agent's own system prompts via evolutionary search, achieving a 4.49-point average accuracy improvement over Manual-CoT across five diverse benchmarks.

System prompt optimization improves agent behavior without modifying the underlying model, yielding human-readable, model-agnostic instructions. Existing methods build a prompt agent that refines task agents' system prompts, yet leave the prompt agent's own system prompt hand-engineered and fixed. We propose Self-Evolving Prompt Optimization (SePO), which treats the prompt agent's own system prompt as an optimization target alongside task agents' system prompts. SePO adopts a self-referential design. A single prompt agent improves both task agents' system prompts and its own under an open-ended evolutionary search that maintains an archive of candidate prompts as stepping stones. Training proceeds in two stages: pre-training evolves the prompt agent on a multi-task pool, and fine-tuning then applies it to a target task. Across five benchmarks spanning math (AIME'25), abstract reasoning (ARC-AGI-1), graduate-level science (GPQA), code generation (MBPP), and logic puzzles (Sudoku), SePO consistently outperforms Manual-CoT, TextGrad, and MetaSPO, improving the average accuracy by 4.49 points compared to Manual-CoT. The prompt optimization skill from pre-training also generalizes to tasks beyond the pre-training mixture, rather than memorizing per-task prompts.

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