Course Outline

Understanding AI TRiSM

  • Introduction to AI TRiSM
  • The importance of trust and security in AI
  • Overview of AI risks and challenges

Foundations of Trustworthy AI

  • Principles of AI trustworthiness
  • Ensuring fairness, reliability, and robustness in AI systems
  • AI ethics and governance

Risk Management in AI

  • Identifying and assessing AI risks
  • Mitigation strategies for AI-related risks
  • AI risk management frameworks

Security Aspects of AI

  • AI and cybersecurity
  • Protecting AI systems from attacks
  • Secure AI development lifecycle

Compliance and Data Protection

  • Regulatory landscape for AI
  • AI compliance with data privacy laws
  • Data encryption and secure storage in AI systems

AI Model Governance

  • Governance structures for AI
  • Monitoring and auditing AI models
  • Transparency and explainability in AI

Implementing AI TRiSM

  • Best practices for implementing AI TRiSM
  • Case studies and real-world examples
  • Tools and technologies for AI TRiSM

Future of AI TRiSM

  • Emerging trends in AI TRiSM
  • Preparing for the future of AI in business
  • Continuous learning and adaptation in AI TRiSM

Summary and Next Steps

Requirements

  • An understanding of basic AI concepts and applications
  • Experience with data management and IT security principles is beneficial

Audience

  • IT professionals and managers
  • Data scientists and AI developers
  • Business leaders and policymakers
 21 Hours

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