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Abstract
Large language models are prone to misuse and vulnerable to security threats,
raising significant safety and security concerns. The European Union's
Artificial Intelligence Act seeks to enforce AI robustness in certain contexts,
but faces implementation challenges due to the lack of standards, complexity of
LLMs and emerging security vulnerabilities. Our research introduces a framework
using ontologies, assurance cases, and factsheets to support engineers and
stakeholders in understanding and documenting AI system compliance and security
regarding adversarial robustness. This approach aims to ensure that LLMs adhere
to regulatory standards and are equipped to counter potential threats.