After 17 years working with cloud technology, I’ve seen a clear pattern. AI projects rarely fail because the model is weak. More often, the problem is that the platform was built for traditional applications, not for AI. GenAI and agents add extra demands on the architecture. AI also brings unpredictable traffic and new security and governance challenges. Here’s a reference architecture I use when designing AI-native platforms on Microsoft Azure. It’s not a strict blueprint, but a practical structure to keep teams aligned and prevent surprises as the solution grows. User and API entry layer Start with a clear entry point. Focus on predictable performance, strong security, and access control. On Azure, many teams use Azure Front Door or Application Gateway for incoming traffic, then add Azure API Management to manage API exposure, throttling, authentication, and versioning. A common mistake is exposing AI endpoints directly to the internet. It might seem quick for a proof of concept, bu...
Cloud as a Story - Vunvulea Radu
DREAMER, CRAFTER, TECHNOLOGY ENTHUSIAST, SPEAKER, TRAINER, AZURE MVP, SOLVING HARD BUSINESS PROBLEMS WITH CUTTING-EDGE TECHNOLOGY