Enterprise Guide
Enterprise AI Governance
Building a comprehensive AI governance program.
· 6 min read
As AI adoption accelerates, enterprises need governance frameworks to manage risk, ensure compliance, and maintain trust.
Governance Components
- Policies: Acceptable use, data handling, model selection
- Risk assessment: Evaluate AI applications before deployment
- Monitoring: Continuous observability of AI behavior
- Compliance: Documentation for audits and regulations
- Incident response: Procedures for AI failures
Implementation Steps
- 1. Inventory: Catalog all AI systems in use
- 2. Classify: Risk-tier each application
- 3. Monitor: Implement observability for high-risk systems
- 4. Document: Create audit trails
- 5. Review: Regular governance assessments
Monitoring as Foundation
You can't govern what you can't see. Observability provides:
- Visibility into AI behavior
- Evidence for compliance
- Early warning of issues
- Data for governance decisions
What is AI governance?
AI governance is the framework of policies, processes, and controls that ensure AI systems are developed and deployed responsibly. It covers risk management, compliance, ethics, and operational oversight.
What should governance include?
Key components: AI use policies, risk assessment processes, monitoring and observability, compliance documentation, incident response procedures, and regular audits. Start with visibility into what AI is doing.
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