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AI Product Lifecycle

The AEEF transformation track originally focused on AI-assisted software engineering workflows. To become an AI company, organizations also need lifecycle controls for AI-powered product behavior in production: model quality gates, monitoring, drift detection, and model incident response.

This section adds that missing layer.

Scope

Applies to any shipped feature where AI output affects user-facing behavior, business decisions, or operational automation.

Examples:

  • AI-driven recommendation systems
  • AI copilots embedded in product UI
  • Classification/routing models in core workflows
  • AI-generated customer content and summaries

Lifecycle Stages

  1. Pre-release evaluation: quality, safety, and reliability checks before shipping
  2. Release gating: explicit go/no-go criteria for AI feature launches
  3. Production monitoring: model and behavior telemetry with thresholds
  4. Drift response: controlled rollback or model update when quality degrades
  5. Incident response: structured handling of harmful or high-impact failures

Required Artifacts

  • AI feature risk tier and intended-use definition
  • Evaluation dataset and benchmark results
  • Release gate decision record
  • Production monitoring dashboard and alert thresholds
  • Incident playbook and on-call ownership

Subsections

Integration with Existing AEEF Components