Certified Responsible AI Governance & Ethics (C|RAGE) Training in Australia

  • Learn via: Classroom / Virtual Classroom / Online
  • Duration: 2 Days
  • Price: Please contact for booking options

The Certified Responsible AI Governance & Ethics (C|RAGE) by EC-Council is a globally recognized program designed for professionals who aim to govern, audit, and guide AI systems responsibly.
It empowers leaders to build AI frameworks grounded in ethics, transparency, fairness, and accountability — ensuring compliance and trust in AI-driven organizations.

Upon passing the final exam, participants receive the EC-Council Certified Responsible AI Governance & Ethics (C|RAGE) certification — validating expertise in AI ethics, governance, and responsible leadership.  

We can organize this training at your preferred date and location. Contact Us!

Who Should Attend

  • Executives and decision-makers (C-suite, compliance, HR)

  • Data scientists, AI strategists, and ethics professionals

  • Policy makers, legal advisors, and risk officers

  • Leaders managing AI transformation programs

What You Will Learn

Upon completion, participants will:

  • Develop frameworks for responsible and ethical AI governance

  • Identify and mitigate ethical and regulatory risks

  • Align AI practices with global regulations (AI Act, GDPR, ISO, NIST)

  • Design transparent, explainable, and auditable AI systems

  • Lead organizational AI ethics and compliance initiatives

  • Establish AI ethics boards and governance policies

Training Outline

1. Introduction to AI Ethics and Governance

  • Principles of responsible AI

  • Ethical risks and governance models

  • Transparency and accountability in AI systems

2. Global Regulations and Standards

  • EU AI Act and compliance requirements

  • GDPR, data privacy, and consent management

  • ISO/IEC 42001 and NIST AI RMF integration

3. Corporate AI Governance Frameworks

  • Designing AI governance models

  • AI Ethics Committees and decision-making protocols

  • Policy lifecycle and audit mechanisms

4. Managing Ethical AI Risks

  • Bias detection and mitigation in datasets and models

  • Risk mapping and ethical impact assessments

  • Monitoring AI lifecycle for ethical compliance

5. Secure and Explainable AI

  • Explainable AI (XAI) and transparency tools

  • Secure AI design and accountability layers

  • Human oversight and responsibility models

6. Building an Ethical AI Culture

  • Institutionalizing responsible AI practices

  • Training and awareness programs

  • Organizational maturity in AI ethics



Contact us for more detail about our trainings and for all other enquiries!
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