Intermediate

AI 321 AI Security & Ethics Master Class

Overview
Curriculum
Reviews

This course equips professionals with essential knowledge to navigate AI’s security risks and ethical challenges. Participants will explore foundational AI concepts, risk mitigation strategies, and governance frameworks. The programme blends technical insight with practical tools for responsible AI deployment. Ideal for leaders seeking to drive secure and ethical innovation in their organisations.

Curriculum

  • 11 Sections
  • 91 Lessons
  • 0m Duration
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Welcome
1 Lesson
  1. Welcome
Module 1: Introduction to AI Security and Ethics
2 Lessons
  1. 1: Course Introduction and Objectives
  2. 2: Fundamentals of Artificial Intelligence
Module 2: Ethical Principles in AI
3 Lessons
  1. 1: Understanding Ethics in AI
  2. 2: Core Ethical Principles
  3. 3: Bias and Fairness in AI
Module 3: AI Security Fundamentals
4 Lessons
  1. 1: Introduction to AI Security
  2. 2: Vulnerabilities in AI Systems
  3. 3: Securing AI Pipelines
  4. 3.2: Securing AI Deployment Pipelines
Module 4: Privacy and Data Protection in AI
6 Lessons
  1. 1: Data Privacy Principles
  2. 1.2: Privacy Risks in AI and How to Mitigate Them
  3. 2: Privacy-Preserving AI Techniques
  4. 2.2: Homomorphic Encryption – AI Can Compute on Encrypted Data
  5. 3: Ethical Data Collection and Usage
  6. 3.2: Balancing Data Utility and Privacy Concerns
Module 5: Governance and Accountability in AI
10 Lessons
  1. 1: AI Governance Frameworks
  2. 1.2 : Case Study: Implementing AI Governance at ACME INNOVA
  3. 1.3 : Stakeholder Engagement and Communication
  4. 2: Accountability in AI Systems
  5. 2.2: Transparency and Explainability
  6. 2.3: Building a Culture of Accountability
  7. 3: Building Ethical AI Organizations
  8. 3.2: Creating an Ethical AI Governance Committee
  9. 3.3: Promoting Diversity and Inclusion in AI Teams
  10. 3.4: Case Study: Building an Ethical AI Organization at ACME INNOVA
Module 6: AI Security Best Practices
16 Lessons
  1. 1: Introduction to AI Security
  2. 1.2: Challenges in AI Security
  3. 1.3: Adversarial Machine Learning
  4. 1.4: Incident Response and Recovery
  5. 2: Securing AI Models
  6. 2.2: What is Adversarial Training?
  7. 2.3: Continuous Monitoring of AI Model Performance
  8. 2.4: Incident Detection and Response for AI Systems
  9. 3: Protecting Data in AI Systems
  10. 3.2: Access Controls and Authentication
  11. 3.3: Implementing Data Access Audits
  12. 3.4: Secure Data Transfer Protocols
  13. 4: Responding to AI Security Incidents
  14. 4.2: Containment Strategies
  15. 4.3: Legal & Regulatory Response
  16. 4.4: Leveraging AI for Incident Response
Module 7: Ethical AI Deployment
15 Lessons
  1. 1: Introduction to Ethical AI Deployment
  2. 1.2: Key Components of Ethical AI Deployment
  3. 1.3: Stakeholder Engagement in Ethical Deployment
  4. 1.4: Case Study: Overcoming Ethical Deployment Challenges at CovenantTech Solutions
  5. 2: Best Practices for Ethical AI Deployment
  6. 2.2: Implementing Robust Data Privacy Measures
  7. 2.3: Leveraging Technology for Ethical Deployment
  8. 2.4: Best Practices Summary
  9. 3: Ethical Considerations in AI Deployment
  10. 3.2: Addressing Algorithmic Bias and Fairness
  11. 3.3: Fostering an Ethical AI Culture
  12. 4: Monitoring and Maintaining Ethical AI Systems
  13. 4.2: Utilizing AI for Ethical Compliance Checks
  14. 4.3: Fostering a Culture of Ethical Continuous Improvement
  15. 4.4: Addressing Emerging Ethical Challenges
Module 8: Ethical AI in Decision-Making
13 Lessons
  1. 1: Introduction to Ethical AI in Decision-Making
  2. 1.2: Case Study: Ethical Decision-Making at Nexora Systems
  3. 1.3: Ensuring Transparency and Explainability
  4. 1.4: Case Study: Overcoming Ethical Challenges in AI Decision-Making at Nexora Systems
  5. 2: Implementing Fairness in AI Decision-Making
  6. 2.2: Tools and Techniques for Fairness Implementation
  7. 2.3: Inclusive Design and Development Practices
  8. 3: Transparency and Explainability in AI Decisions
  9. 3.2: Communicating AI Decisions to Stakeholders
  10. 3.3: Case Study: Enhancing Explainability in AI Decision-Making at Nexora Systems
  11. 4: Accountability and Responsibility in AI Decision-Making
  12. 4.2:  Implementing Accountability Mechanisms
  13. 4.3: Case Study: Ensuring Accountability in AI Decision-Making at Nexora Systems
Module 9: Intellectual Property (IP) Considerations for Corporations in the AI Era
20 Lessons
  1. 1: Introduction to Intellectual Property in AI
  2. 1.2: Case Study: IP Strategy at Agape Tech Solutions
  3. 2: Patents and AI Innovations
  4. 2.2: The Patent Application Process
  5. 2.3: Best Practices for Patent Protection in AI
  6. 3: Copyright and AI-Generated Content
  7. 3.2: Challenges of Copyright in AI Creations
  8. 3.3: Best Practices for Copyright Protection in AI
  9. 4: Trade Secrets and AI
  10. 4.2: Protecting Trade Secrets in AI Development
  11. 4.3: Tools and Resources for Trade Secret Protection
  12. 5: Licensing and Collaboration in AI Development
  13. 5.2: Collaborative Development and IP Sharing
  14. 5.3: Tools and Resources for Licensing Management
  15. 6: IP Management Strategies for AI Corporations
  16. 6.2: IP Portfolio Management
  17. 6.3: Tools and Resources for IP Management
  18. 7: Legal Frameworks and Compliance in IP for AI
  19. 7.2: Navigating International IP Protection
  20. 7.3: Tools and Resources for Legal Compliance and IP Protection
Module 10: Course Conclusion and Key Takeaways
1 Lesson
  1. Final Section: Course Conclusion and Key Takeaways

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