Rethinking and Maturing AI Adoption
Many organizations are discovering, as they accelerate
adoption of artificial intelligence (AI), that business and operational success
with AI depends on far more than deploying AI models or experimenting with
generative AI tools. Successful AI adoption occurs at the intersection of
software engineering practices, the realities of system and enterprise
architecture modernization, governance, cybersecurity, workforce readiness, workflow
reengineering, operational integration, and enterprise strategy. Organizations must manage technological challenges that have
intensified with AI adoption, including growing dependencies, vendor lock-in,
and the imperative to innovate and scale quickly. Leaders
must also adapt to new emerging realities, from the operational and financial
demands of supporting multiple frontier models to the novel security and
governance risks introduced by agentic AI approaches. Traditional approaches to
technology transformation are no longer sufficient to thrive in this
environment.
To address these emerging complexities and drive success, Carnegie
Mellon University’s Software Engineering Institute (SEI) collaborated with
Accenture to develop the AI Adoption Maturity Model—an evidence-backed,
field-tested instrument that provides a structured, yet agile, pathway for scaling
AI capabilities across enterprises to ensure value and return on investment (ROI).
This approach is designed for today’s realities, including fast-paced
technological change, limited time and resources, and the need for lightweight,
actionable methods rather than burdensome documentation.
In this webcast, experts from the SEI and Accenture share
technical insights and lessons learned from maturing AI adoption in complex
environments. They will demonstrate how a nimble assessment instrument such as
the road-tested AI Adoption Maturity Model fills critical gaps faced by
organizations adopting AI.
What Will Attendees Learn?
- How AI maturity extends beyond isolated experimentation to encompass scalable, repeatable, measurable, and governed organizational capabilities.
- How common pitfalls and strengths that we observed in early adopter organizations during AI Adoption Maturity Assessments can influence AI adoption.
- How certain approaches to integrating existing risk management routines and security processes can support AI adoption.
- How an agile, lightweight maturity assessment approach can enable organizations to rapidly prioritize activities, align efforts, and make targeted progress.
Speaker Details
Anita Carleton
John Haller
Anthony Leraris
Ipek Ozkaya
Rajendra Prasad
Majd Sakr
Kaveh Safavi M.D., J.D.
Event Topic
Artificial Intelligence, Digital TransformationRelevant Audiences
All Military, All State and Local Government, All Federal Government, All Private Sector, All Government Contractors