The Hourglass Model (v3) of
Organizational AI Governance

Based on rigorous research with several AI experts, the Hourglass Model (v3) presents the overall structure of the AI Governance Framework.

What’s new in v3:

• Ecosystem-aware • Vendor-integrated • GenAI-explicit • Human capability embedded • Realistic about explainability • Adaptive and agile

Citation: Mäntymäki, M., Minkkinen, M., Birkstedt, T., & Viljanen, M. (2022). Putting AI Ethics into Practice: The Hourglass Model of Organizational AI Governance (arXiv:2206.00335). arXiv. https://doi.org/10.48550/arXiv.2206.00335

The Hourglass Model (v3) consists of seven designated
focus areas (A–G) and related tasks.

Scroll down or click the buttons below to view the focus areas and tasks.

A

A. Accountability and ownership. Putting in place the decision rights and responsibilities to govern AI systems and models, including an organization-wide AI system registry, human oversight, AI competence, and the integration of AI sourcing and operations with organizational governance. 

B. AI system. Documentation, performance metrics, and approval processes for AI systems. Maintaining AI system documentation providing a complete view of the organizations’ AI systems and models. Governing AI system vendors including vendor oversight and contractual relationships. 

C. AI model. Documentation, performance metrics, and approval processes for AI modelsMaintaining documentation on the AI models used by the organization. 

D. AI data. Data quality management, data sourcing, performance metrics and control points. Ensuring copyright, intellectual property, and privacy issues related to AI data are handled. 

E. Risk and impact management. Identifying, managing, and monitoring potential risks and impacts caused by the AI system. Risks may be related to, e.g., discrimination, misleading content produced by generative AI systems, violations of fundamental rights, safety issues, and foreseeable misuse of AI systems. 

F. Transparency and explainability. Ensuring AI systems’ transparency and explainability. Fulfilling requirements coming from regulation and stakeholders. Ensuring vendor transparency regarding AI products and the use of AI in products and services. 

G. Regulatory compliance.  Understanding the regulatory environment of an AI system and ensuring its compliance with the relevant regulations (in the EU for example the GDPR, AI Act, national regulations, sector-specific regulations).