City-LEO: Toward Transparent City Management Using LLM with End-to-End Optimization
Zihao Jiao, Mengyi Sha, Haoyu Zhang, Xinyu Jiang, Wei Qi

TL;DR
City-LEO leverages large language models and end-to-end optimization to improve transparency, efficiency, and relevance of city management solutions, demonstrated through e-bike sharing system case studies.
Contribution
The paper introduces City-LEO, an LLM-based agent that combines logical reasoning and end-to-end models to enhance city management optimization tasks.
Findings
City-LEO outperforms full-scale optimization in solution relevance.
It reduces computational time significantly.
It achieves lower suboptimality without losing accuracy.
Abstract
Existing operations research (OR) models and tools play indispensable roles in smart-city operations, yet their practical implementation is limited by the complexity of modeling and deficiencies in optimization proficiency. To generate more relevant and accurate solutions to users' requirements, we propose a large language model (LLM)-based agent ("City-LEO") that enhances the efficiency and transparency of city management through conversational interactions. Specifically, to accommodate diverse users' requirements and enhance computational tractability, City-LEO leverages LLM's logical reasoning capabilities on prior knowledge to scope down large-scale optimization problems efficiently. In the human-like decision process, City-LEO also incorporates End-to-end (E2E) model to synergize the prediction and optimization. The E2E framework be conducive to coping with environmental…
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Taxonomy
TopicsTraffic Prediction and Management Techniques · Transportation and Mobility Innovations · Traffic control and management
