Conversational LLM optimization agents achieve higher-quality solutions than one-shot approaches in a school scheduling case study by iteratively refining proposals with simulated stakeholders.
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Let's Have a Conversation: Designing and Evaluating LLM Agents for Interactive Optimization
Conversational LLM optimization agents achieve higher-quality solutions than one-shot approaches in a school scheduling case study by iteratively refining proposals with simulated stakeholders.