The Private AI Lab
AI in healthcare didn’t start with ChatGPT. Long before generative AI, hospitals were using machine learning for sepsis detection, imaging diagnostics, and predictive analytics. In this episode of The Private AI Lab, Johan sits down with Vincent Tsugranes, Chief Architect at Red Hat, to explore what’s real, what’s hype, and why platform matters more than ever. They discuss: * Why 95% of AI projects fail * The evolution from OpenShift Data Science to OpenShift AI * Models-as-a-Service inside hospitals * vLLM vs LLMD for large-scale inference * Guardrails, hallucinations, and enterprise risk * Sovereign cloud and why healthcare is moving on-prem again * What “ambient AI” might mean in the next 12 months This episode is for architects, platform engineers, healthcare IT leaders, and anyone building private AI in regulated environments. 00:00 – Red lights & farming with AI 02:10 – The first AI spark moment 04:00 – When “AI” became AI (ChatGPT moment) 07:20 – Why 95% of AI projects fail 11:00 – Machine learning vs modern AI 13:30 – Platform vs point solutions 16:00 – The history of OpenShift AI 19:00 – What is OpenShift AI under the hood? 22:00 – Hardware enablement & NVIDIA 25:00 – vLLM explained 27:30 – LLMD and distributed inference 30:00 – Healthcare use cases (sepsis, imaging, insurance) 33:00 – Models-as-a-Service inside hospitals 36:00 – Guardrails & hallucination risks 39:00 – Observability & FinOps explosion 42:00 – OpenShift 5 and platform intelligence 44:30 – Sovereign cloud in healthcare 48:00 – The future: ambient AI & rising power bills
16 episodios
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