This course introduces the foundations and practical implementation of Responsible AI, focusing on building AI systems that are fair, transparent, interpretable, and privacy-aware.

Responsible AI in Practice: Fairness, Bias & Explainability

Responsible AI in Practice: Fairness, Bias & Explainability
This course is part of Responsible AI Specialization

Instructor: Edureka
Access provided by KAUST Academy learning programs
Recommended experience
What you'll learn
Explain the core principles of fairness, interpretability, privacy, and accountability in Responsible AI systems.
Analyze AI models using fairness metrics, explainability methods, and privacy evaluation techniques.
Apply bias mitigation, interpretability, and privacy-preserving methods to improve AI system reliability.
Evaluate trade-offs between fairness, privacy, interpretability, and model performance in real-world AI solutions.
Skills you'll gain
- AI Security
- Decision Intelligence
- Information Privacy
- Machine Learning
- Machine Learning Methods
- Stakeholder Analysis
- Model Evaluation
- Trustworthiness
- AI literacy
- Governance
- Artificial Intelligence and Machine Learning (AI/ML)
- Data Ethics
- Security Strategy
- Business Risk Management
- Responsible AI
- Ethical Standards And Conduct
- Risk Management
- Risk Mitigation
- Risk Analysis
- Security Management
Details to know

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May 2026
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¹ Some assignments in this course are AI-graded. For these assignments, your data will be used in accordance with Coursera's Privacy Notice.
