DyACE: Dynamic Algorithm Co-evolution for Online Automated Heuristic Design with Large Language Model
arXiv cs.AI / 3/17/2026
📰 NewsIdeas & Deep AnalysisModels & Research
Key Points
- DyACE reframes Automated Heuristic Design as a non-stationary bi-level control problem to enable dynamic adaptation of heuristics across different search phases.
- The framework employs a Receding Horizon Control architecture to co-evolve heuristic logic with the evolving solution population, unlike traditional static solvers.
- A Look-Ahead Rollout Search extracts Search Trajectory Features, enabling the LLM to act as a grounded meta-controller prescribing phase-specific interventions based on real-time search status.
- Empirical results on three combinatorial optimization benchmarks show significant performance gains over static baselines, and ablation studies confirm that dynamic adaptation relies on grounded perception for effectiveness.
Related Articles
How political censorship actually works inside Qwen, DeepSeek, GLM, and Yi: Ablation and behavioral results across 9 models
Reddit r/LocalLLaMA
Engenharia de Prompt: Por Que a Forma Como Você Pergunta Muda Tudo(Um guia introdutório)
Dev.to
The Obligor
Dev.to
The Markup
Dev.to
2026 年 AI 部落格變現完整攻略:從第一篇文章到月收入 $1000
Dev.to