In our previous post, we explored the common pitfalls that prevent GenAI initiatives from moving beyond proof-of-concept. Now, let’s talk about the solution that makes enterprise-scale GenAI not only possible—but repeatable, secure, and efficient: Platform Engineering (PE). '
Platform engineering is the unsung hero of modern software delivery. It’s the discipline that builds the internal platforms, tools, and templates that enable developers and data scientists to move fast—without breaking things. And when it comes to GenAI, it’s absolutely essential.
At its core, platform engineering is about creating reusable, self-service infrastructure that empowers teams to build and deploy applications quickly and safely. For GenAI, this means:
Think of it as giving your teams a “GenAI sandbox” that’s safe, scalable, and production-ready.
Rolling out GenAI testbeds without platform engineering is like handing out keys to a Ferrari without a driver’s license. You might get speed—but you’ll also get chaos, cost overruns, and compliance nightmares.
InCycle’s GenAI Accelerator Platform is a prime example of platform engineering in action. It includes:
For instance, a data science team working on a healthcare chatbot can deploy a RAG Lite template with Azure OpenAI, Cosmos DB, and Azure AI Search—all pre-integrated and secured. No need to reinvent the wheel. No need to wait on infrastructure.
Platform engineering isn’t just a technical solution—it’s a strategic enabler. According to Gartner, by 2026, 80% of software engineering organizations will establish platform teams as internal providers of reusable services and tools.
In short, platform engineering makes it easy to do the right things—and hard to do the wrong ones.
In the next post, we’ll dive into how to identify, prioritize, and design high-impact GenAI use cases. You’ll learn how to move from “what’s possible” to “what’s valuable”—and how to build a roadmap that delivers results.