OptiRepair: Closed-Loop Diagnosis and Repair of Supply Chain Optimization Models with LLM Agents
Ruicheng Ao, David Simchi-Levi, Xinshang Wang

TL;DR
This paper introduces OptiRepair, an AI-based system that autonomously diagnoses and repairs infeasible supply chain models, significantly improving operational feasibility and rationality through a two-phase, domain-specific approach.
Contribution
The paper presents a novel AI framework with self-taught reasoning for supply chain model repair, achieving high rational recovery rates and addressing key gaps in solver interaction and operational rationality.
Findings
Trained models reach 81.7% Rational Recovery Rate.
API models only recover 42.2% of infeasible problems.
Two main gaps: solver interaction and operational rationale.
Abstract
Supply chain optimization models frequently become infeasible because of modeling errors. Diagnosis and repair require scarce OR expertise: analysts must interpret solver diagnostics, trace root causes across echelons, and fix formulations without sacrificing operational soundness. Whether AI agents can perform this task remains untested. We decompose this task into two phases: a domain-agnostic feasibility phase that iteratively repairs any LP using IIS-guided diagnosis, and a domain-specific validation phase that enforces five rationality checks grounded in inventory theory. We test 22 API models from seven families on 976 multi-echelon supply chain problems and train two 8B-parameter models with self-taught reasoning and solver-verified rewards. The trained models reach 81.7% Rational Recovery Rate (RRR) -- the fraction of problems resolved to both feasibility and operational…
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Taxonomy
TopicsAI-based Problem Solving and Planning · Big Data and Business Intelligence · Forecasting Techniques and Applications
