When AI initiatives fail, the model is usually blamed.
But that explanation is structurally wrong.
In this episode, Roland reframes AI failure as a data architecture accountability problem, not a mathematical one. AI doesn’t invent new issues, it faithfully exposes the decisions, trade-offs, and ambiguities that already exist upstream.
This conversation moves the focus from model performance to:
Because accuracy is downstream.
Architecture is upstream.
🎧 Listen to The Data Journey wherever you get your podcasts, or visit thedatajourney.com