Understanding the Supply Chain and Risks of Large Language Model Applications
Yujie Ma, Lili Quan, Xiaofei Xie, Qiang Hu, Jiongchi Yu, Yao Zhang, Sen Chen

TL;DR
This paper introduces a comprehensive dataset and analysis of the supply chain vulnerabilities of Large Language Model applications, highlighting complex dependencies and security risks across models, datasets, and libraries.
Contribution
It provides the first large-scale dataset and systematic analysis of LLM supply chain risks, filling a critical gap in security benchmarking.
Findings
Deeply nested dependencies in LLM applications
Significant vulnerabilities identified across supply chain components
Need for comprehensive security measures emphasized
Abstract
The rise of Large Language Models (LLMs) has led to the widespread deployment of LLM-based systems across diverse domains. As these systems proliferate, understanding the risks associated with their complex supply chains is increasingly important. LLM-based systems are not standalone as they rely on interconnected supply chains involving pretrained models, third-party libraries, datasets, and infrastructure. Yet, most risk assessments narrowly focus on model or data level, overlooking broader supply chain vulnerabilities. While recent studies have begun to address LLM supply chain risks, there remains a lack of benchmarks for systematic research. To address this gap, we introduce the first comprehensive dataset for analyzing and benchmarking LLM supply chain security. We collect 3,859 real-world LLM applications and perform interdependency analysis, identifying 109,211 models, 2,474…
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Taxonomy
TopicsTopic Modeling · Natural Language Processing Techniques
