OCCLMAJun 16, 2024

City-LEO: Toward Transparent City Management Using LLM with End-to-End Optimization

arXiv:2406.10958v210 citations
Originality Incremental advance
AI Analysis

This work addresses the problem of limited practical implementation of operations research tools in smart-city management for city planners and operators, offering an incremental improvement by integrating LLMs with existing optimization methods.

The paper tackles the complexity and optimization deficiencies in smart-city operations by proposing City-LEO, an LLM-based agent that enhances efficiency and transparency through conversational interactions and end-to-end optimization, achieving lower global suboptimality and more relevant solutions with less computational time in an e-bike sharing case study.

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 uncertainties and involving more query-relevant features, and then facilitates transparent and interpretable decision-making process. In case study, we employ City-LEO in the operations management of e-bike sharing (EBS) system. The numerical results demonstrate that City-LEO has superior performance when benchmarks against the full-scale optimization problem. With less computational time, City-LEO generates more satisfactory and relevant solutions to the users' requirements, and achieves lower global suboptimality without significantly compromising accuracy. In a broader sense, our proposed agent offers promise to develop LLM-embedded OR tools for smart-city operations management.

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