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EU AI Act Compliance Guide: Risk Tiers, Audit Logs, and AI Governance Tools

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The EU AI Act entered into force on August 1, 2024, with full enforcement set for August 2, 2026, requiring organizations to classify and manage their AI systems under a three-tier risk framework. Systems are categorized as prohibited, high-risk, or limited/minimal risk, each carrying different regulatory obligations. Chatbots and AI-generated content tools fall under the limited-risk tier, obligating operators to disclose to users that they are interacting with an AI. To meet compliance requirements, developers are advised to build organizational infrastructure including an AI system registry, risk assessor, and audit logging tools. Maintaining a centralized inventory of all AI systems in use is identified as the critical first step toward regulatory compliance and risk management.

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EU AI Act Compliance Guide: Risk Tiers, Audit Logs, and AI Governance Tools · ShortSingh