About
Key Takeaways:
- Inference—not training—is now the primary driver of real business value in AI, and requires a fundamentally different approach to infrastructure and operations.

- The biggest barrier to successful AI adoption is the “production gap,” where systems that perform well in testing break down under real-world conditions like scale, latency, and variability.

- Modern AI workloads—especially agentic and multi-step systems—introduce new challenges such as bursty demand, observability blind spots, and unpredictable costs that traditional environments aren’t designed to handle.

- Bridging the gap between experimentation and production requires rethinking how performance, reliability, and control are managed across the full AI stack.

- CoreWeave is purpose-built for production AI, with differentiated full-stack optimization from metal to model and third-party validation including MLPerf v6.0 leadership, a SemiAnalysis ClusterMAX Platinum rating, and NVIDIA Exemplar Cloud validation.
Presenters
1762978148-2ea3fba69ac5f452
Jared Harris
Webinar Host
1779216086-5044c943998a49a4
Urvashi Chowdhary
VP, Product Management - AI Services - CoreWeave
1779216170-9ad105f5c8ce89dd
Nick Patience
VP & Practice Lead, AI Platforms - The Futurum Group
Nick is Vice President & Practice Lead, AI Platforms. He is a thought leader on the development, deployment and adoption of AI — an area he has been researching for 25 years. Prior to Futurum, Nick was a Managing Analyst with S&P Global Market Intelligence, with responsibility for 451 Research’s coverage of Data, AI, Analytics, Information Security and Risk. He is a sought-after speaker and advisor, known for his expertise in the drivers of AI adoption, industry use cases, and the infrastructure behind its development and deployment.