AgenticRecTune: Multi-Agent with Self-Evolving Skillhub for Recommendation System Optimization
Xidong Wu, Yue Zhuan, Ruoqiao Wei, Hangxin Chen, Di Bai, Jintao Liu, Xinyi Wang, Xue Wang, Luoshu Wang, Xinwu Cheng

TL;DR
AgenticRecTune is a multi-agent framework leveraging LLMs to optimize complex recommendation system configurations efficiently through autonomous exploration, testing, and skill evolution.
Contribution
It introduces a novel multi-agent system with self-evolving skills that automates end-to-end configuration optimization in recommendation systems.
Findings
Successfully explores optimal configurations using LLM-driven agents.
Automates A/B testing and captures experimental results autonomously.
Enhances system-level configuration tuning with self-evolving skills.
Abstract
Modern large-scale recommendation systems are typically constructed as multi-stage pipelines, encompassing pre-ranking, ranking, and re-ranking phases. While traditional recommendation research typically focuses on optimizing a specific model, such as improving the pre-ranking model structure or ranking models training algorithm, system-level configurations optimization play a crucial role, which integrates the output from each model head to get the final score in each stage. Due to the complexity of the system, the configuration optimization is highly important and challenging. Any model modification requires new optimal system-level configurations. But each experimental iteration requires significant tuning effort. Furthermore, models in different stage operates within a distinct context and optimizes for different targets, requiring specialized domain expertise. In addition,…
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