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AI Tooling on OpenShift: A Practitioner's Evaluation Framework

Pipeline & Prompts | Byte size guides on DevOps, Cloud and AI ** AI in the Stack #1** Byte size summary After reading this article, you'll have a framework for evaluating AI tools in platform engineering contexts — not by capability type, but by where in your workflow the tool actually changes the outcome. You'll understand why the tools that sound most compelling are still hype, where genuine productivity gains exist today, and what governance infrastructure you need in place before any AI component gets near production. This article is the foundation for the series; subsequent articles implement each touch point against real OpenShift infrastructure. The story I spent months selling IBM's AI and data science portfolio before I truly understood what I was selling. I knew the pitch. Predictive analytics. Optimization. Decision intelligence. I could walk a room through the business value without breaking a sweat. CPLEX for scheduling, Watson for insights — I had the slides, the talking points, the customer stories. Then I sat in on a data scientist demo. Not a sales demo. An actual working session — models being trained, outputs being interrogated, assumptions being challenged in real time. And somewhere in that room, watching someone do the thing I'd been describing from the outside, something clicked — and not in a good way. The models were impressive. The theory was solid. But I kept asking myself the same quiet question: where does this go next? Because most of what I saw never made it anywhere near production. It lived in notebooks. In slide decks. In proof-of-concept environments that were never ready to cross the line into something real. I'd been selling outcomes — optimised schedules, smarter decisions, reduced costs — without a clear path to how you'd actually get there. And underneath all of it, something else bothered me that nobody was talking about loudly enough: the data going into these models was often messy, unvalidated, and ungoverned. Bias wasn't

2026-06-15 原文 →