Thank you for sending your enquiry! One of our team members will contact you shortly.
Thank you for sending your booking! One of our team members will contact you shortly.
Course Outline
Introduction to Responsible AI and Ethics
- Defining responsible AI and AI ethics
- Importance of ethical considerations in AI applications
- Key principles: fairness, accountability, transparency
Bias in AI and Mitigation Strategies
- Understanding bias in AI models and data
- Types of biases and their impacts on AI outcomes
- Bias mitigation techniques: pre-processing, in-processing, and post-processing
Ethical Auditing and Accountability in AI
- Introduction to AI auditing frameworks and tools
- Conducting audits to assess fairness and transparency
- Implementing accountability measures in AI systems
Exploring Ethical Frameworks and Compliance
- Overview of ethical frameworks like the EU AI Act and IEEE standards
- Legal and regulatory compliance in AI systems
- Case studies on responsible AI regulations and industry standards
Building Transparency and Explainability in AI
- Introduction to explainable AI techniques
- Building interpretable models for greater transparency
- Using tools for model explainability and decision traceability
Governance and Risk Management in AI
- Developing governance frameworks for responsible AI
- Risk management and ethical considerations in AI deployment
- Strategies for stakeholder engagement and oversight
Future Directions in Ethical AI
- Emerging trends and challenges in AI ethics
- Adapting governance frameworks for future AI technologies
- Promoting an ethical AI culture within organizations
Summary and Next Steps
Requirements
- Basic understanding of AI and machine learning concepts
- Familiarity with data privacy and compliance standards
Audience
- Data scientists and AI practitioners interested in ethical AI development
- Compliance officers and legal professionals overseeing AI regulation
- Business leaders and decision-makers involved in AI strategy and governance
14 Hours