Section 01
Introduction to the New Paradigm for Supply Chain Risk Early Warning: Fusion Practice of Multimodal Large Models and Graph Neural Networks
Against the backdrop of globalization, supply chain vulnerability has become prominent, while traditional risk management methods are lagging and lack systematicness. This article introduces a multimodal supply chain disruption risk early warning system that integrates large language models (LLM), deep time-series learning, and graph neural networks (GNN). It aims to address pain points such as data silos, hidden risk transmission, and lack of interpretability, achieve proactive warning and full-chain risk monitoring, and provide technical support for enterprises to enhance supply chain resilience.