NL2OR: Solve Complex Operations Research Problems Using Natural Language Inputs

Li, Junxuan, Wickman, Ryan, Bhatnagar, Sahil, Maity, Raj Kumar, Mukherjee, Arko

arXiv.org Artificial Intelligence 

Operations research (OR) uses mathematical models to enhance decision-making, but developing these models requires expert knowledge and can be time-consuming. Automated mathematical programming (AMP) has emerged to simplify this process, but existing systems have limitations. This paper introduces a novel methodology that uses recent advances in Large Language Model (LLM) to create and edit OR solutions from non-expert user queries expressed using Natural Language. This reduces the need for domain expertise and the time to formulate a problem. The paper presents an end-to-end pipeline, named NL2OR, that generates solutions to OR problems from natural language input, and shares experimental results on several important OR problems.