Enterprise AI in Production

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Enterprise AI in production.

This is the centre of gravity for my current research and public positioning: what it takes to move AI past proof of concept theatre and into systems that senior leaders can trust, fund, govern, and measure.

The production checklist

Governance

Ownership, risk boundaries, model policies, approvals, human oversight, and accountability.

MLOps and monitoring

Deployment, drift, observability, quality checks, incident response, and continuous improvement.

FinOps

Understanding the cost curve of inference, experimentation, model choice, and operational scale.

Adoption

Workflow fit, change management, training, incentives, and the painful gap between demo usage and real usage.

Planned assets

  • Why AI proofs of concept die before production.
  • The enterprise AI production checklist.
  • AI governance as an operating model.
  • FinOps for AI product leaders.
  • MLOps for executives.