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Main Authors: Quan, Yinzhu, Xu, Yujia, Chen, Guanlin, Benaben, Frederick, Montreuil, Benoit
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2503.21115
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author Quan, Yinzhu
Xu, Yujia
Chen, Guanlin
Benaben, Frederick
Montreuil, Benoit
author_facet Quan, Yinzhu
Xu, Yujia
Chen, Guanlin
Benaben, Frederick
Montreuil, Benoit
contents The growing emphasis on energy efficiency and environmental sustainability in global supply chains introduces new challenges in the deployment of hyperconnected logistic hub networks. In current volatile, uncertain, complex, and ambiguous (VUCA) environments, dynamic risk assessment becomes essential to ensure successful hub deployment. However, traditional methods often struggle to effectively capture and analyze unstructured information. In this paper, we design an Large Language Model (LLM)-driven risk assessment pipeline integrated with multiple analytical tools to evaluate logistic hub deployment. This framework enables LLMs to systematically identify potential risks by analyzing unstructured data, such as geopolitical instability, financial trends, historical storm events, traffic conditions, and emerging risks from news sources. These data are processed through a suite of analytical tools, which are automatically called by LLMs to support a structured and data-driven decision-making process for logistic hub selection. In addition, we design prompts that instruct LLMs to leverage these tools for assessing the feasibility of hub selection by evaluating various risk types and levels. Through risk-based similarity analysis, LLMs cluster logistic hubs with comparable risk profiles, enabling a structured approach to risk assessment. In conclusion, the framework incorporates scalability with long-term memory and enhances decision-making through explanation and interpretation, enabling comprehensive risk assessments for logistic hub deployment in hyperconnected supply chain networks.
format Preprint
id arxiv_https___arxiv_org_abs_2503_21115
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Leveraging Large Language Models for Risk Assessment in Hyperconnected Logistic Hub Network Deployment
Quan, Yinzhu
Xu, Yujia
Chen, Guanlin
Benaben, Frederick
Montreuil, Benoit
Computation and Language
The growing emphasis on energy efficiency and environmental sustainability in global supply chains introduces new challenges in the deployment of hyperconnected logistic hub networks. In current volatile, uncertain, complex, and ambiguous (VUCA) environments, dynamic risk assessment becomes essential to ensure successful hub deployment. However, traditional methods often struggle to effectively capture and analyze unstructured information. In this paper, we design an Large Language Model (LLM)-driven risk assessment pipeline integrated with multiple analytical tools to evaluate logistic hub deployment. This framework enables LLMs to systematically identify potential risks by analyzing unstructured data, such as geopolitical instability, financial trends, historical storm events, traffic conditions, and emerging risks from news sources. These data are processed through a suite of analytical tools, which are automatically called by LLMs to support a structured and data-driven decision-making process for logistic hub selection. In addition, we design prompts that instruct LLMs to leverage these tools for assessing the feasibility of hub selection by evaluating various risk types and levels. Through risk-based similarity analysis, LLMs cluster logistic hubs with comparable risk profiles, enabling a structured approach to risk assessment. In conclusion, the framework incorporates scalability with long-term memory and enhances decision-making through explanation and interpretation, enabling comprehensive risk assessments for logistic hub deployment in hyperconnected supply chain networks.
title Leveraging Large Language Models for Risk Assessment in Hyperconnected Logistic Hub Network Deployment
topic Computation and Language
url https://arxiv.org/abs/2503.21115