Go beyond AI adoption tracking
These help you make sense of the metrics that matter.
Two research reports that give engineering leaders the framework and KPIs to turn AI activity into a defensible ROI story.
What You're Getting
REPORT 01
AI Isn't Working Unless Your Team Is
"The New Standards for Measuring Impact"
Engineering leaders are under pressure to prove AI is working. The problem is that most organizations are measuring the wrong thing. Individual usage rates don't tell the ROI story. Team-level adoption does.
REPORT 02
Key Indicators of AI Impact Every Engineering Leader Should Measure
"The 5 KPIs That Tell the Real Story"
Most teams track who turned on the AI tool. Almost none can connect it to delivery outcomes. This report gives you the 5-KPI chain that actually closes that gap.
Download Reports
Gain key insights for measuring your AI impact.
- The leading and lagging indicator framework that connects AI to business outcomes
- How to build a unified AI feedback loop from adoption through to cost efficiency
- The 4 enterprise standards for AI ROI your leadership team can act on now
You Might Also Find These Interesting
Why 88% of Teams Adopt AI Tools But Only 33% See Real Impact—And What to Do About It
88% of teams adopted AI tools. Only 33% see real impact. McKinsey's James Kaplan explains why—and what the companies scaling AI are doing differently.
Read More
Why Some Org Transformations Stick: Lessons from DevOps and Agile for the AI Era
DevOps and Agile stuck because they removed friction, not just headcount. What friction does AI remove? That's how you predict what roles survive.
Read More
Stacked Sessions
Stacked Sessions is the podcast where software engineering meets business strategy. Hosted by Allstacks, each bi-weekly episode brings together...
Read More