Keywords: Vehicle Routing Problems, VRP, Foundation Models, Neural Combinatorial Optimization
TL;DR: We introduce RouteFinder, a foundation model for Vehicle Routing Problems
Abstract: This paper introduces RouteFinder, a comprehensive foundation model framework to tackle different Vehicle Routing Problem (VRP) variants. Our core idea is that a foundation model for VRPs should be able to represent variants by treating each as a subset of a generalized problem equipped with different attributes. We propose a unified VRP environment capable of efficiently handling any attribute combination. The RouteFinder model leverages a modern transformer-based encoder and global attribute embeddings to improve task representation. Additionally, we introduce two reinforcement learning techniques to enhance multi-task performance: mixed batch training, which enables training on different variants at once, and multi-variant reward normalization to balance different reward scales. Finally, we propose efficient adapter layers that enable fine-tuning for new variants with unseen attributes. Extensive experiments on 48 VRP variants show RouteFinder achieves competitive results. Our code is openly available.
Primary Area: foundation or frontier models, including LLMs
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Submission Number: 13796
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