Automated Constraint Specification for Job Scheduling by Regulating Generative Model with Domain-Specific Representation
By: Yu-Zhe Shi , Qiao Xu , Yanjia Li and more
Potential Business Impact:
Helps factories plan production automatically and faster.
Advanced Planning and Scheduling (APS) systems have become indispensable for modern manufacturing operations, enabling optimized resource allocation and production efficiency in increasingly complex and dynamic environments. While algorithms for solving abstracted scheduling problems have been extensively investigated, the critical prerequisite of specifying manufacturing requirements into formal constraints remains manual and labor-intensive. Although recent advances of generative models, particularly Large Language Models (LLMs), show promise in automating constraint specification from heterogeneous raw manufacturing data, their direct application faces challenges due to natural language ambiguity, non-deterministic outputs, and limited domain-specific knowledge. This paper presents a constraint-centric architecture that regulates LLMs to perform reliable automated constraint specification for production scheduling. The architecture defines a hierarchical structural space organized across three levels, implemented through domain-specific representation to ensure precision and reliability while maintaining flexibility. Furthermore, an automated production scenario adaptation algorithm is designed and deployed to efficiently customize the architecture for specific manufacturing configurations. Experimental results demonstrate that the proposed approach successfully balances the generative capabilities of LLMs with the reliability requirements of manufacturing systems, significantly outperforming pure LLM-based approaches in constraint specification tasks.
Similar Papers
SMARTAPS: Tool-augmented LLMs for Operations Management
Artificial Intelligence
Lets anyone easily plan business using chat.
Integrated Planning and Machine-Level Scheduling for High-Mix Discrete Manufacturing: A Profit-Driven Heuristic Framework
Computational Engineering, Finance, and Science
Makes factories finish jobs on time, every time.
Automatic MILP Model Construction for Multi-Robot Task Allocation and Scheduling Based on Large Language Models
Artificial Intelligence
Lets robots build things by talking to them.