Explainable AI for Everyone
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What you'll learn
Explain core Explainable AI concepts, including interpretability, transparency, and model understanding.
Apply techniques like SHAP, LIME, and Permutation Importance to interpret model predictions.
Analyze model behavior using global and local explanation methods for deeper insights.
Evaluate bias, fairness, and trade-offs to build trustworthy and responsible AI systems.
Skills you'll gain
- Decision Tree Learning
- Classification And Regression Tree (CART)
- Trustworthiness
- Machine Learning Methods
- Applied Machine Learning
- Data Ethics
- Machine Learning
- Data Visualization
- Statistical Methods
- Stakeholder Analysis
- Model Evaluation
- Debugging
- Artificial Intelligence and Machine Learning (AI/ML)
- Interactive Data Visualization
- Technical Communication
- Regression Analysis
- Responsible AI
- Data Storytelling
- Feature Engineering
Tools you'll learn
Details to know
May 2026
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There are 4 modules in this course
This program explores how Explainable AI (XAI) enables practitioners to understand, interpret, and communicate machine learning model behavior with clarity and confidence. You’ll begin by learning the foundational principles of explainability, including interpretability, transparency, and the taxonomy of explanation methods. Through hands-on activities, you will explore how different types of explanations apply to real-world models and how inherently interpretable models such as linear models and decision trees provide direct insight into model behavior.
You’ll then dive into post-hoc explanation techniques that help interpret complex and black-box models. You will learn the difference between model-agnostic and model-specific methods and apply techniques such as permutation importance, Partial Dependence Plots (PDP), and Individual Conditional Expectation (ICE) to analyze global feature effects. Practical demonstrations will guide you through implementing these methods, visualizing model behavior, and interpreting patterns that influence predictions. Next, you’ll explore local explanation techniques, focusing on understanding individual predictions using LIME and SHAP. You will learn how surrogate models approximate local behavior and how Shapley values provide a theoretically grounded approach to feature attribution. Hands-on exercises will help you generate and interpret both global and local SHAP insights, enabling deeper understanding of model decisions at multiple levels. Finally, you’ll examine the critical aspects of trust, fairness, and communication in Explainable AI. You will learn how bias emerges in machine learning systems, how to evaluate fairness using practical tools, and how to balance accuracy with interpretability. You will also design clear and effective explanation reports, using visual and narrative techniques to communicate insights to both technical and non-technical stakeholders. By the end of this program, you will be able to: - Explain core Explainable AI concepts, including interpretability, transparency, and taxonomy - Interpret inherently interpretable models, including linear models and decision trees - Apply explanation techniques, including permutation importance, PDP, ICE, LIME, and SHAP - Evaluate model fairness, including bias detection and performance interpretability trade-offs - Design explanation reports, including clear and stakeholder-focused communication This program is designed for data scientists, machine learning engineers, AI practitioners, and analysts who want to build trustworthy and interpretable machine learning systems. A basic understanding of machine learning concepts and Python will help maximize your learning experience. Learners need a reliable internet connection, a modern web browser, and access to standard machine learning tools and Python environments; no specialized hardware is required. Join us to master Explainable AI and learn how to interpret, evaluate, and communicate machine learning models with confidence and clarity.
Build a strong foundation in Explainable AI by learning how to interpret and analyze machine learning models. Explore key concepts like interpretability, transparency, and inherently interpretable models such as linear regression and decision trees. Apply these concepts through hands-on exercises to understand model behavior and real-world applications.
What's included
14 videos6 readings4 assignments
14 videos•Total 71 minutes
- Specialization Overview•8 minutes
- Course Introduction•4 minutes
- The Present AI Landscape•4 minutes
- Introduction to Explainable AI•4 minutes
- Interpretability vs. Transparency vs. Explainability•4 minutes
- Taxonomy of Explainability•4 minutes
- Hands-On: Mapping Explainability Types on a Sample Model•7 minutes
- Hands-On: Interpreting Explainability Taxonomy Results•3 minutes
- Interpretability in Linear and Logistic Regression•5 minutes
- Decision Trees and Rule-Based Models•5 minutes
- Hands-On: Interpreting Coefficients and Tree Decisions•7 minutes
- Hands-On: Analyzing Decision Rules and Model Insights•3 minutes
- Hands-On: Building an Interpretable ML Model•6 minutes
- Hands-On: Baseline Feature Importance Exploration•6 minutes
6 readings•Total 60 minutes
- Course Syllabus•10 minutes
- Key Explainable AI Terms and Concepts•10 minutes
- Human - Centered Explainable AI•10 minutes
- Limitations of Inherently Interpretable Models in Real-World Applications•10 minutes
- Correlation vs. Causation in Feature Importance•10 minutes
- Module Summary: Foundations of Explainable AI•10 minutes
4 assignments•Total 33 minutes
- Knowledge Check: Foundations of Explainable AI•15 minutes
- Knowledge Check: Explainable AI Essentials•6 minutes
- Knowledge Check: Inherently Interpretable Models•6 minutes
- Knowledge Check: Interpretable Model Implementation•6 minutes
Explore how to interpret complex black-box models using post-hoc explanation techniques. Apply methods like Permutation Importance, PDP, ICE, LIME, and SHAP to analyze global patterns and individual predictions. Gain hands-on experience extracting meaningful insights from real-world models.
What's included
16 videos4 readings4 assignments
16 videos•Total 74 minutes
- Post-Hoc Explainability•5 minutes
- Model-Agnostic vs. Model-Specific•4 minutes
- Hands-On: Comparing Inherent vs. Post-Hoc Explanations•7 minutes
- Hands-On: Analyzing and Interpreting Post-Hoc Explanations•5 minutes
- Understanding Feature Attribution through Permutation Importance•4 minutes
- Feature Effect Estimation with PDP and ICE•4 minutes
- Hands-On: Implementing Permutation Importance•7 minutes
- Hands-On: Interpreting Permutation Importance Results•3 minutes
- Hands-On: PDP and ICE Visualization•7 minutes
- Hands-On: Interpreting PDP and ICE Insights•2 minutes
- LIME and Local Surrogate Models•3 minutes
- SHAP and Shapley Value Foundations•4 minutes
- Hands-On: LIME for Individual Predictions•6 minutes
- Hands-On: Interpreting LIME Explanations•4 minutes
- Hands-On: SHAP Value Visualization•7 minutes
- Hands-On: Interpreting SHAP Global and Local Insights•3 minutes
4 readings•Total 40 minutes
- How Post-Hoc Explanations Approximate Black-Box Models•10 minutes
- Feature Interactions in Machine Learning•10 minutes
- LIME vs. SHAP: Local Explanation Differences•10 minutes
- Module Summary: Post-Hoc Explanation Techniques•10 minutes
4 assignments•Total 33 minutes
- Knowledge Check: Post-Hoc Explanation Techniques•15 minutes
- Knowledge Check: Understanding Post-Hoc Explainability•6 minutes
- Knowledge Check: Global Feature Effect Methods•6 minutes
- Knowledge Check: Local Post-Hoc Methods•6 minutes
Build trustworthy and responsible AI systems by addressing bias, fairness, and effective communication of model insights. Evaluate model fairness, understand interpretability–performance trade-offs, and apply practical techniques to detect bias. Gain hands-on experience creating clear, stakeholder-focused explanation reports using SHAP insights.
What's included
7 videos3 readings3 assignments
7 videos•Total 35 minutes
- Sources of Bias in ML Systems•3 minutes
- Accuracy vs. Interpretability Trade-Off•3 minutes
- Hands-On: Bias Detection Using Fairlearn•6 minutes
- Hands-On Evaluating and Interpreting Model Bias•5 minutes
- Designing Explanation Narratives for Stakeholders•3 minutes
- Hands-On: Building Explanation Reports•7 minutes
- Hands-On: Enhancing Explanation Reports with SHAP Insights•7 minutes
3 readings•Total 30 minutes
- Fairness vs. Accuracy in Machine Learning•10 minutes
- Balancing Simplicity and Accuracy in Explanation Narratives•10 minutes
- Module Summary: Trust, Bias, and Communication•10 minutes
3 assignments•Total 27 minutes
- Knowledge Check: Trust, Bias, and Communication•15 minutes
- Knowledge Check: Fairness and Bias Foundations•6 minutes
- Knowledge Check: Communicating Explanations•6 minutes
This final module assess your understanding of Explainable AI concepts through practical application. Interpret models, apply global and local explanation methods, and evaluate fairness and bias. Communicate insights through clear reports, demonstrating your ability to build transparent and trustworthy AI systems.
What's included
1 video1 reading2 assignments
1 video•Total 3 minutes
- Course Summary•3 minutes
1 reading•Total 30 minutes
- Practice Project: Building a Complete Explainable AI System for FinTrust Analytics•30 minutes
2 assignments•Total 60 minutes
- End Course Knowledge Check: Foundations & Core Explainability•30 minutes
- Designing Explainable and Fair Machine Learning Systems•30 minutes
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Frequently asked questions
This course is ideal for data scientists, machine learning engineers, AI practitioners, and developers who want to understand and interpret machine learning models. It is also suitable for professionals interested in building transparent, fair, and trustworthy AI systems.
The course covers Explainable AI fundamentals, interpretability techniques, and fairness concepts. You will learn how to interpret models using SHAP, LIME, Permutation Importance, PDP, and ICE, evaluate bias and fairness, and communicate model insights effectively to stakeholders.
Yes! The course includes demonstrations and practice assignments using industry-standard XAI tools. You will work with SHAP, LIME, and Fairlearn to analyze model predictions, visualize feature importance, and evaluate fairness in real-world scenarios.
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Financial aid available,
¹ Some assignments in this course are AI-graded. For these assignments, your data will be used in accordance with Coursera's Privacy Notice.
