Industrial Intelligence Solutions with Causal AI : Daniele Gamba - CEO, AISent Srl

For decades, manufacturers have relied on traditional analytics—correlations, trendlines, dashboards—to make operational decisions. But there's a limit: Correlation ≠ Causation Just because two variables move together doesn’t mean one causes the other.  This blind spot can lead to poor decisions and surface-level fixes that don’t solve the real issue. For example, a machine’s temperature spikes often coincide with defects. Traditional analytics might alert you when it happens—but not why. Is it the temperature? A faulty sensor? Operator error? Causal Inference flips the script. Instead of just observing data patterns, it asks: “What actually caused this outcome?” I recently sat down with Daniele Gamba, CEO of AISent Srl to learn more about building industrial intelligence solutions with Caussal AI.

Om Podcasten

Each episode of The Fourth Generation Podcast will treat you to an in-depth interview with some of the world's leading IIoT practitioners where we really dive deep into technical and actionable details of building Industrial IoT Solutions.