governance2026-01-051 min read
Enterprise AI Governance Basics
A practical governance baseline for agentic AI: policies, approvals, audits, and risk controls.
title: Enterprise AI Governance Basics
description: A practical governance baseline for agentic AI: policies, approvals, audits, and risk controls.
date: 2026-01-05
tags: [governance, compliance, auditability]
Baseline controls
- Policy-as-code for tools and data access
- Versioned prompts and workflows
- Audit logs and replay
- Budget controls and routing rules
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