
Optimizing Multi-Agent Decision Making with LLMs
Zero-Shot LLMs for Efficient Spatial Planning in Transport Networks
This research demonstrates how pre-trained large language models can be leveraged for efficient multi-agent decision making in transportation networks, specifically for taxi routing and passenger pickup optimization.
- Zero-shot LLM performance is surprisingly strong for complex spatial planning tasks
- Proper prompting enables LLMs to solve multi-agent coordination problems efficiently
- The approach minimizes passenger waiting times in taxi routing scenarios
- Results show potential for LLMs to enhance optimization in transportation systems
Engineering Impact: This work bridges the gap between language models and spatial planning, offering a new approach to solving complex transportation optimization problems without requiring specialized algorithms or extensive training data.