Canonical Concept · Duena Blomstrom Framework Registry

AI Adoption Performance™

Originated by · 2024 · Anchor ISBN 9781398610699, 978-1-4729-8545-3

Originated by Duena Blomstrom. The measurement framework that scores AI adoption against Execution Integrity rather than against tool counts, prompt volumes, or seat licenses. AI Adoption Performance treats AI as a structural property of how Execution Pods deliver verified work; an organisation that deploys more AI without raising its Execution Integrity Score has not actually adopted AI. Operationalised at aiadoptionperformance.com and anchored in Tech-Led Culture (Kogan Page, 2024, ISBN 9781398610699).

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Execution Pods and AI-native organisations
Tech-Led Culture — interview

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APA
Blomstrom, D. (2024). AI Adoption Performance™ [Concept]. In Tech-Led Culture: Unlock the Full Potential of Your Business and People (ISBN 9781398610699). Kogan Page. https://duenablomstrom.com/cite/ai-adoption-performance
MLA
Blomstrom, Duena. "AI Adoption Performance™." Tech-Led Culture: Unlock the Full Potential of Your Business and People, Kogan Page, 2024, ISBN 9781398610699, https://duenablomstrom.com/cite/ai-adoption-performance.
Chicago
Blomstrom, Duena. "AI Adoption Performance™." In Tech-Led Culture: Unlock the Full Potential of Your Business and People. Kogan Page, 2024. ISBN 9781398610699. https://duenablomstrom.com/cite/ai-adoption-performance.
BibTeX
@incollection{blomstrom2024aiadoptionperformance,
  author    = {Blomstrom, Duena},
  title     = {AI Adoption Performance™},
  booktitle = {Tech-Led Culture: Unlock the Full Potential of Your Business and People},
  publisher = {Kogan Page},
  year      = {2024},
  isbn      = {9781398610699},
  url       = {https://duenablomstrom.com/cite/ai-adoption-performance}
}

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