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NIST AI Risk Management Framework 1.0

NIST AI RMF (Risk Management Framework) BETA

The leading voluntary framework for managing AI risk — NIST AI Risk Management Framework 1.0, published January 2023 — providing guidance for organisations to identify, assess, and manage risks across the AI lifecycle through four core functions: Govern, Map, Measure, and Manage, oriented around the characteristics of trustworthy AI.

GUIDED PATHWAYS

New to NIST AI RMF? Start with what applies to you

Our guided pathways filter the Act by role, sector and use case, so you spend your time on the Articles that carry obligations for your business — and skip the ones that do not.

šŸ¢ What Is NIST AI RMF?
A plain-language introduction to AI RMF 1.0 — what the framework is, who it is for, and how it differs from a standard. Covers the framework's origins in the National AI Initiative Act of 2020, its voluntary and non-certifiable nature, the role of the AI RMF Playbook as companion guidance, and what "using the AI RMF" means in practice for organisations developing, deploying, or governing AI systems.
10 ITEMS · 10 ART.
šŸŽÆ NIST AI RMF and the EU AI Act
How the voluntary US framework relates to the binding EU regulation. Covers where AI RMF functions and categories produce evidence supporting EU AI Act obligations (risk management under Article 9, data governance under Article 10, human oversight under Article 14, post-market monitoring under Article 72), where the two diverge in legal effect and scope, and why the AI RMF is not a harmonised standard under the Act but is widely used as substantive methodology alongside it.
6 ITEMS · 4 ART. · 2 ANN.
šŸ“… NIST AI RMF and ISO 42001 for AI
How the framework relates to the certifiable international management system standard. Covers the structural difference (voluntary guidance versus certifiable management system), the substantive overlap (both address risk, lifecycle, governance, impact, and trustworthiness), how the four functions map to ISO 42001 clauses and Annex A controls, and how organisations commonly use the two together — AI RMF as methodology source, ISO 42001 as the management system frame.
8 ITEMS · 8 ART.
āš ļø NIST AI RMF Core Functions: Govern, Map, Measure, Manage
A walkthrough of the framework's structural core. Govern establishes the culture, policies, and accountability for AI risk management across the organisation. Map establishes context and identifies risks specific to AI systems and their deployment environments. Measure analyses, assesses, and monitors AI risks through quantitative and qualitative methods. Manage allocates resources to address risks and respond to incidents. Each function contains categories and subcategories detailing specific outcomes the organisation seeks to achieve.
13 ITEMS · 11 ART. · 2 ANN.
šŸ¤– Characteristics of Trustworthy AI
A reference guide to the seven characteristics NIST AI RMF framework treats as the substantive goals of AI risk management: valid and reliable, safe, secure and resilient, accountable and transparent, explainable and interpretable, privacy-enhanced, and fair with harmful bias managed. Covers how each characteristic is defined, where tensions between them arise, and how the framework expects organisations to balance them in design and deployment decisions.
9 ITEMS · 7 ART. · 2 ANN.
āš–ļø NIST AI RMF Implementation and Organisational Adoption
A practical guide to using the framework inside an organisation. Covers how to scope an AI RMF adoption — by AI system, business unit, or enterprise — how to assess current maturity against the four functions, how to sequence implementation across Govern, Map, Measure, and Manage, and how to allocate ownership across AI development, risk, compliance, legal, and product teams. Covers the role of self-attestation and how to document NIST AI RMF use for customers and partners.
8 ITEMS · 8 ART.