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Course Outline
AI Security Governance Foundations
- Core principles of AI governance
- Enterprise security frameworks for AI
- Stakeholder roles and responsibilities
AI Risk Assessment Methodologies
- Identifying and categorizing AI security risks
- Threat modeling for AI-enabled systems
- Impact assessment and prioritization
Secure AI System Design
- Designing for confidentiality, integrity, and availability
- Implementing security controls in AI pipelines
- Model lifecycle management considerations
AI Data Protection and Privacy
- Data governance for machine learning
- Managing sensitive and regulated data
- Privacy-enhancing technologies
Monitoring and Securing AI Operations
- Continuous evaluation of AI behavior
- Detecting drift, anomalies, and misuse
- Operational threat intelligence for AI systems
Regulatory and Compliance Alignment
- Global standards impacting AI security
- Documentation and audit readiness
- Aligning governance with legal obligations
Incident Response for AI Systems
- AI-specific attack vectors and indicators
- Response workflows for compromised models
- Post-incident review and remediation
Strategic AI Security Management
- Building long-term AI security capability
- Integrating AI risk into enterprise strategy
- Maturity assessments and continuous improvement
Summary and Next Steps
Requirements
- An understanding of cybersecurity risk principles
- Experience with AI or data-driven systems
- Familiarity with enterprise security governance
Audience
- Security managers overseeing AI initiatives
- Governance and risk professionals
- Technical leaders responsible for secure AI adoption
21 Hours