Emerging Security Challenges of Large Language Models
Herve Debar, Sven Dietrich, Pavel Laskov, Emil C. Lupu, Eirini Ntoutsi

TL;DR
Large language models are widely adopted across sectors, but their vulnerabilities to adversarial attacks pose significant security challenges, requiring thorough analysis of risks, attack objectives, and supply chain security.
Contribution
This paper provides a comprehensive analysis of the security vulnerabilities of large language models, highlighting differences from traditional ML models and discussing attack objectives and supply chain risks.
Findings
LLMs have unique vulnerabilities compared to traditional ML models.
Assessing LLM security risks is complex and multifaceted.
Supply chain analysis reveals critical security implications.
Abstract
Large language models (LLMs) have achieved record adoption in a short period of time across many different sectors including high importance areas such as education [4] and healthcare [23]. LLMs are open-ended models trained on diverse data without being tailored for specific downstream tasks, enabling broad applicability across various domains. They are commonly used for text generation, but also widely used to assist with code generation [3], and even analysis of security information, as Microsoft Security Copilot demonstrates [18]. Traditional Machine Learning (ML) models are vulnerable to adversarial attacks [9]. So the concerns on the potential security implications of such wide scale adoption of LLMs have led to the creation of this working group on the security of LLMs. During the Dagstuhl seminar on "Network Attack Detection and Defense - AI-Powered Threats and Responses", the…
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Taxonomy
TopicsTopic Modeling
