Course Outline

Introduction to Explainable AI

  • What is Explainable AI (XAI)?
  • Importance of transparency in AI models
  • Key challenges in AI interpretability

Basic XAI Techniques

  • Model-agnostic methods: LIME, SHAP
  • Model-specific explainability methods
  • Explaining decisions made by black-box models

Hands-On with XAI Tools

  • Introduction to open-source XAI libraries
  • Implementing XAI in simple machine learning models
  • Visualizing explanations and model behavior

Challenges in Explainability

  • Accuracy vs interpretability trade-offs
  • Limitations of current XAI methods
  • Handling bias and fairness in explainable models

Ethical Considerations in XAI

  • Understanding the ethical implications of AI transparency
  • Balancing explainability with model performance
  • Privacy and data protection concerns in XAI

Real-World Applications of XAI

  • XAI in healthcare, finance, and law enforcement
  • Regulatory requirements for explainability
  • Building trust in AI systems through transparency

Advanced XAI Concepts

  • Exploring counterfactual explanations
  • Explaining neural networks and deep learning models
  • Interpreting complex AI systems

Future Trends in Explainable AI

  • Emerging techniques in XAI research
  • Challenges and opportunities for future AI transparency
  • Impact of XAI on responsible AI development

Summary and Next Steps

Requirements

  • Basic understanding of machine learning concepts
  • Familiarity with Python programming

Audience

  • AI beginners
  • Data science enthusiasts
 14 Hours

Number of participants


Price per participant

Upcoming Courses

Related Categories