AI production failures follow patterns. After reviewing post-mortems from 200+ enterprise AI programs, the same gaps recur: data readiness issues identified too late to address without delay, model validation steps skipped under schedule pressure, production infrastructure assumptions that held in staging but not at scale, change management activities deprioritized during integration crunch, and governance documentation assembled retroactively after audit requests rather than built as deployment artifacts. This 48-page guide packages those post-mortem learnings into a 200-point implementation checklist organized across six deployment stages, with role-based views for program managers, architects, data engineers, and governance teams.
Our implementation advisors have managed deployments across 200+ enterprise AI programs. We provide advisory oversight that catches the gaps before they become costly post-launch remediation projects.