cs.AI updates on arXiv.org 09月12日
TÜV AUSTRIA可信AI框架:安全认证方法论
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本文介绍了TÜV AUSTRIA的可信AI框架,一个用于评估和认证机器学习系统的端到端审计目录和方法。框架基于安全软件开发、功能需求和伦理与数据隐私三个支柱,将欧盟AI法案的高层次义务转化为具体可测试的标准。通过功能可靠性概念,结合应用域和基于风险的最低性能要求,以及独立样本数据的统计测试,提供模型质量的透明和可复现证据。

arXiv:2509.08852v1 Announce Type: cross Abstract: There is an increasing adoption of artificial intelligence in safety-critical applications, yet practical schemes for certifying that AI systems are safe, lawful and socially acceptable remain scarce. This white paper presents the T\"UV AUSTRIA Trusted AI framework an end-to-end audit catalog and methodology for assessing and certifying machine learning systems. The audit catalog has been in continuous development since 2019 in an ongoing collaboration with scientific partners. Building on three pillars - Secure Software Development, Functional Requirements, and Ethics & Data Privacy - the catalog translates the high-level obligations of the EU AI Act into specific, testable criteria. Its core concept of functional trustworthiness couples a statistically defined application domain with risk-based minimum performance requirements and statistical testing on independently sampled data, providing transparent and reproducible evidence of model quality in real-world settings. We provide an overview of the functional requirements that we assess, which are oriented on the lifecycle of an AI system. In addition, we share some lessons learned from the practical application of the audit catalog, highlighting common pitfalls we encountered, such as data leakage scenarios, inadequate domain definitions, neglect of biases, or a lack of distribution drift controls. We further discuss key aspects of certifying AI systems, such as robustness, algorithmic fairness, or post-certification requirements, outlining both our current conclusions and a roadmap for future research. In general, by aligning technical best practices with emerging European standards, the approach offers regulators, providers, and users a practical roadmap for legally compliant, functionally trustworthy, and certifiable AI systems.

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可信AI 安全认证 机器学习 欧盟AI法案 功能可靠性
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