AI Ethics Course
AI Ethics Course
Real-world case studies throughout.
Key Learning Points
Key Learning Points
- Identify and assess ethical risks in AI systems
- Recognise bias, fairness and transparency issues
- Conduct privacy and fairness assessments
- Navigate accountability questions with confidence
- Implement ethical safeguards
If attending an online course you must have a licensed copy of any software required and access to a suitable computer.
You will need access to one paid AI tool such as ChatGPT, Copilot, or Claude.
Who is this course for?
For professionals responsible for AI use within their organisation — including managers, compliance teams, HR, L&D and anyone involved in AI governance or policy. No technical background required.
Expert Trainers
Course leader is an experienced industry expert
Course Dates
| Course Dates | Days | Location | Places | RRP | Discount | You Pay | |
|---|---|---|---|---|---|---|---|
| 10th Aug 26 | Mon | London Islington | Available | £399.00 | £50.00 | £349.00 + VAT | |
| 9th Oct 26 | Fri | Online | Available | £399.00 | £20.00 | £379.00 + VAT | |
| 10th Dec 26 | Thu | Online | Available | £399.00 | £399.00 + VAT |
| Course Dates | Days | Location | Places | RRP | Discount | You Pay | |
|---|---|---|---|---|---|---|---|
| 10th Aug 26 | Mon | London Islington | Available | £399.00 | £50.00 | £349.00 + VAT |
| Course Dates | Days | Location | Places | RRP | Discount | You Pay | |
|---|---|---|---|---|---|---|---|
| 9th Oct 26 | Fri | Online | Available | £399.00 | £20.00 | £379.00 + VAT | |
| 10th Dec 26 | Thu | Online | Available | £399.00 | £399.00 + VAT |
Course Dates
10th Aug 26 (Mon)
9th Oct 26 (Fri)
10th Dec 26 (Thu)
Course Outline
Foundations of AI Ethics
What is AI Ethics and why it matters now.
Core ethical principles for AI.
Regulatory landscape (EU AI Act, UK frameworks).
Real-world case studies of ethical failures.
Understanding AI Bias
Sources of algorithmic bias (training data, selection, historical).
How bias amplifies through AI systems.
Protected characteristics and discrimination law.
Mitigation strategies and best practices.
Fairness Frameworks
Different definitions of fairness.
Individual vs group fairness.
Demographic parity, equal opportunity, predictive parity.
Trade-offs between fairness metrics.
Choosing appropriate criteria for your context.
Transparency and Explainability
The 'black box' problem
Levels of transparency required.
Explainability techniques - LIME and SHAP
Legal and ethical requirements for explanation.
Trade-offs: accuracy vs interpretability.
Privacy and Data Protection
GDPR and UK data protection fundamentals.
Lawful basis for processing and data minimisation.
Privacy by design principles.
AI-specific risks (re-identification, inference attacks).
Individual rights (access, rectification, erasure).
Consent and Autonomy
Meaningful consent in AI contexts.
Dark patterns and manipulative design.
Automated decision-making rights (GDPR Article 22).
Designing for informed choice.
Protecting vulnerable populations.
Accountability and Responsibility
Stakeholder responsibilities
Documentation and audit trails.
Human oversight requirements.
Liability and insurance considerations.
Creating effective oversight mechanisms.
Ethical Decision-Making Frameworks
IEEE Ethically Aligned Design
EU Ethics Guidelines for Trustworthy AI.
UK Government's AI ethics framework.
Practical application steps.
Case study analysis and peer review.
Implementation and Governance
Building an ethical AI culture.
Establishing governance structures (ethics committees, review boards, etc).
Creating policies and procedures.
Red flags: when to pause or stop.
Continuous monitoring and evaluation.
Emerging Challenges
Generative AI and misinformation.
Deepfakes and synthetic media.
AI environmental impact.
Employment displacement and worker rights.
Medical AI and clinical decision support.
Stakeholder Perspectives
Understanding different viewpoints.
Balancing competing interests.
Meaningful stakeholder engagement.
Negotiating ethical requirements.
Building Your Ethical AI Toolkit
Checklists and templates.
Impact assessment forms.
Documentation standards.
Bias detection and explainability tools.
Privacy-preserving techniques.
Resources for continued learning.
Career paths
Roles this course supports
People training on AI Ethics often work in the careers below.
Who attends?
Career Progressives
Professionals who wish to develop skills for their current role and companies who believe in developing their talent.
Career Changers
People seeking opportunities which require new skills. Industry relevant training for those pursuing a new role.
Graduates
Certified courses for those who have earned their theoretical stripes, but need to prove capability to future employers.
Learn Your Way
Face To Face
Learn face-to-face with expert mentors in a dynamic setting that inspires growth and confidence.
Live Online
Join remotely with expert mentors in real time — flexible, interactive learning that fits your lifestyle.
Team Training
Upskill your team together. Build your team and develop consistency, and collective confidence.
Three Steps To Success
Identify Your Path
Define your direction with purpose, aligning your learning journey to personal and career goals.
Learn With Experts
Gain practical insight from real-world experts who bring clarity, confidence, and momentum to your growth.
Earn Certification
Your certificate of attendance is proof of progress — benchmarking your skills and commitment to growth.
Further Reading
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