计算机科学
启发式
调度(生产过程)
流水车间调度
作业车间调度
公平份额计划
动态优先级调度
启发式
两级调度
抽奖日程安排
超启发式
分布式计算
人工智能
进化算法
单调速率调度
自然语言
自动计划和调度
工业工程
机器学习
建模语言
作者
Fei Yu,Liang Gao,Xinyu Li,Chao Lü,Qihao Liu
标识
DOI:10.1109/tevc.2026.3655772
摘要
Scheduling is pivotal in manufacturing, significantly impacting production efficiency, cost optimization, and delivery performance. Due to the complexity of modern manufacturing systems, heuristics are widely adopted for their computational efficiency and interpretability. However, crafting effective heuristics is labor-intensive, necessitating substantial domain expertise and iterative trial-and-error processes. Leveraging the advanced capabilities of Large Language Models (LLMs) in code generation and natural language processing, this paper proposes a Language Scheduling Heuristic (LSH) that harnesses pre-trained LLMs to automatically construct scheduling heuristics without human intervention. The key innovation of LSH lies in its integration of three core components: 1) an LLM module that generates candidate heuristics through specific prompts; 2) an evaluation module that assesses heuristic performance based on a predefined evaluation dataset; and 3) an evolutionary module grounded in an evolutionary paradigm to effectively search for promising heuristics. This synergy enables the automated discovery of high-quality heuristics. On benchmarks for Flow Shop Scheduling Problem (FSP), Job Shop Scheduling Problem (JSP), and Open Shop Scheduling Problem (OSP), our framework demonstrates a powerful capability for automated heuristic generation, leading to solutions that outperform established methods.
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