Most enterprise AI programs stall in pilots. This framework exists to get you to attested, production value — and it has a specific answer for each of the six ways programs fail.
9 framework pages · 53-question assessment · 4-phase roadmap
Organizations try to do everything at once — agents, GenAI products, platform build — with no prioritization. Everything is a pilot, nothing reaches production.
Teams adopt AI tools because they're exciting, not because they solve a measured business problem. No baseline, no success criteria, no way to know if it worked.
50 teams building on 50 different stacks. No shared data layer, no model gateway, no observability. Each project reinvents the wheel.
Ship first, worry about safety and compliance later. Then an AI incident hits, and the entire program gets frozen for 6 months.
The tech works but people don't use it. No change management, no training, no feedback loops. Adoption stalls at 15% and the CFO pulls funding.
Hired 20 ML engineers but needed prompt engineers and AI product managers. Or worse — built nothing because "we're still hiring the AI team."
Ask about the framework — questions are reviewed and answered by the author
© 2026 Ramesh Kaluri. All Rights Reserved.