AI Agent Workflow Governance

AI agents become risky when they can touch data, systems, or client outcomes without a clear control model.

Minimum Controls

  • Workflow owner.
  • Data classification.
  • Approved tools and models.
  • Prompt/version control.
  • Human approval rules.
  • Audit logging.
  • Evaluation test cases.
  • Rollback or stop condition.

The defensible AI integrator is not the one that claims autonomy fastest. It is the one that can prove safe workflow execution.

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