AI Agent Systems for Supply Chains: Structured Decision Prompts and Memory Retrieval
AI 摘要
研究基于LLM的多智能体系统在供应链库存管理中的应用,并提出AIM-RM智能体。
主要贡献
- 验证LLM-based MAS在特定场景下能做出最优订购决策
- 提出AIM-RM智能体,通过相似性匹配利用历史经验
- 实验证明AIM-RM在多种供应链场景下优于基准方法
方法论
构建LLM-based MAS,设计固定订购策略prompt和AIM-RM智能体,通过实验评估其在库存管理中的表现。
原文摘要
This study investigates large language model (LLM) -based multi-agent systems (MASs) as a promising approach to inventory management, which is a key component of supply chain management. Although these systems have gained considerable attention for their potential to address the challenges associated with typical inventory management methods, key uncertainties regarding their effectiveness persist. Specifically, it is unclear whether LLM-based MASs can consistently derive optimal ordering policies and adapt to diverse supply chain scenarios. To address these questions, we examine an LLM-based MAS with a fixed-ordering strategy prompt that encodes the stepwise processes of the problem setting and a safe-stock strategy commonly used in inventory management. Our empirical results demonstrate that, even without detailed prompt adjustments, an LLM-based MAS can determine optimal ordering decisions in a restricted scenario. To enhance adaptability, we propose a novel agent called AIM-RM, which leverages similar historical experiences through similarity matching. Our results show that AIM-RM outperforms benchmark methods across various supply chain scenarios, highlighting its robustness and adaptability.