AI‑Powered Apps with Azure OpenAI and Power Platform: How to Design Real Architectures That Survive Beyond the Demo

Mirko PetersPodcasts2 days ago63 Views


Most “AI‑powered” Power Platform demos quietly skip the hard parts: scale, performance, and keeping sensitive data under control once real users start hammering the app. In this episode, we walk through what those demos leave out and show how Azure OpenAI, Power Apps, Power Automate, and Azure API Management actually fit together in production—so your AI workflows survive real traffic, real data, and real audits.

We start by unpacking the real architecture behind AI in Power Platform. You’ll see how Power Apps and Dynamics 365 capture user input, how Power Automate orchestrates the flow, how Azure OpenAI does the heavy thinking, and why Azure API Management quietly becomes the gatekeeper that keeps costs, throttling, and security under control. Using concrete examples—from sales call summaries to ticket triage—we show where performance bottlenecks and hallucinations really come from: messy payloads, missing context, and flows that were never designed for thousands of requests.

From there, we dig into use‑case design: sentiment analysis, summarization, classification, and text generation all look similar from the outside, but behave very differently in cost, latency, and risk. You’ll learn why short, focused sentiment calls scale nicely, while long‑form generation can quietly explode both response times and your Azure bill if you don’t tune prompts, payload sizes, and flow patterns. Real stories of projects that worked in staging and collapsed in production show why “just change the prompt” is not a strategy.

Finally, we connect architecture and design to governance. We cover how to treat AI as part of your core platform—not a side experiment—by using API Management for access control and logging, shaping flows for resilience, and setting clear limits on which data can ever leave your tenant for model processing. By the end, “AI‑powered app” means more than a clever demo; it means a system where every piece—from Power Apps to Azure OpenAI—is wired for stability, security, and business impact.

WHAT YOU LEARN

CORE INSIGHT

The core insight of this episode is that adding Azure OpenAI to Power Platform is not about dropping in a connector—it is about designing an end‑to‑end system where apps, flows, models, and API management each play a clear role. When you treat AI as architecture instead of a magic box, you stop gambling with stability, cost, and data leakage and start building AI‑powered apps that can handle real‑world workloads and real‑world scrutiny.

WHO THIS IS FOR

ABOUT THE HOST

Mirko Peters is a Microsoft 365 and cloud consultant and the host of M365.FM, focused on modern work, security, and AI architectures that actually run in production. He helps organizations move from fragile demos to robust systems on Microsoft 365, Power Platform, and Azure, where tools like Azure OpenAI sit behind proper orchestration, security, and governance. In M365.FM, Mirko turns longform implementation stories—like wiring AI into business apps end‑to‑end—into practical patterns listeners can apply in their own environments.

Become a supporter of this podcast: https://www.spreaker.com/podcast/m365-fm-modern-work-security-and-productivity-with-microsoft-365–6704921/support.



Source link

0 Votes: 0 Upvotes, 0 Downvotes (0 Points)

Leave a reply

Join Us
  • X Network2.1K
  • LinkedIn3.8k
  • Bluesky0.5K
Support The Site
Events
June 2026
MTWTFSS
1 2 3 4 5 6 7
8 9 10 11 12 13 14
15 16 17 18 19 20 21
22 23 24 25 26 27 28
29 30      
« May   Jul »
Follow
Search
Loading

Signing-in 3 seconds...

Signing-up 3 seconds...

Discover more from 365 Community Online

Subscribe now to keep reading and get access to the full archive.

Continue reading