From Pilot to Production: Why Enterprise AI Fails and How to Scale It Right
Artikel konnten nicht hinzugefügt werden
Der Titel konnte nicht zum Warenkorb hinzugefügt werden.
Der Titel konnte nicht zum Merkzettel hinzugefügt werden.
„Von Wunschzettel entfernen“ fehlgeschlagen.
„Podcast folgen“ fehlgeschlagen
„Podcast nicht mehr folgen“ fehlgeschlagen
-
Gesprochen von:
-
Von:
Über diesen Titel
Most AI initiatives don’t fail because the models are weak - they fail because organizations never design for reality.
In this episode of Intelligent Insights, we unpack why 80 - 95% of enterprise AI pilots never make it to production, and what separates scalable AI systems from endless proof-of-concepts. Drawing from industry research and real-world engineering patterns, we explore the hidden blockers behind “pilot purgatory” — including verification tax, MLOps immaturity, technical debt, and misaligned incentives.
We break down a practical roadmap for scaling AI responsibly, starting with high-control, low-agency systems and gradually increasing autonomy as trust is earned. You’ll learn why Human-in-the-Loop (HITL) frameworks, disciplined data foundations, and cost-aware hosting strategies matter more than choosing the latest model.
This episode is not about hype. It’s about shipping AI that survives contact with production.
If you’re a product leader, engineer, founder, or executive trying to move AI from demos to durable business impact - this one’s for you.
