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VentureBeat

Why AI that works in the lab often fails in production — and what actually fixes it

Why AI that works in the lab often fails in production — and what actually fixes it
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Presented by Capital One Enterprises aren’t struggling to experiment with AI; they’re struggling to make it work in the real world. Moving from promising prototypes to reliable, production-scale systems is where most efforts stall. In my role within Capital One’s AI Foundations organization, I’ve seen firsthand that successful AI implementation isn’t just about adopting the latest models or tool

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