5.0
Advanced
7h
Master Explainable AI: Interpreting Image Classifier Decisions
Discover Explainable AI tools to interpret deep learning classifiers. Use saliency maps, activation maps, and metrics to lead the GenAI revolution and future-proof your skills.
Explainable AI is a set of tools and frameworks that helps you understand and interpret the internal logic behind the predictions made by a deep learning network. With this, you can generate insights into the behavior and working of the model to mitigate issues around it in the development phase.
In this course, you will be introduced to popular Explainable AI algorithms such as smooth gradient, integrated gradient, LIME, class activation maps, counterfactual explanations, feature attributions, etc., for image classification networks such as MobileNet-V2 trained on large-scale datasets like ImageNet-1K.
By the end of this course, you will understand the need for Explainable AI and be able to design and implement popular explanation algorithms like saliency maps, class activation maps, counterfactual explanations, etc. You will be able to evaluate and quantify the quality of the neural network explanations via several interpretability metrics.
Explainable AI is a set of tools and frameworks that helps you understand and interpret the internal logic behind the prediction...Show More
WHAT YOU'LL LEARN
A deep understanding of the need and benefits of Explainable AI
The ability to design and implement popular explanation algorithms
Hands-on experience combining existing explanation methods to generate more robust explanations
An understanding of explainers used to interpret the decision of a neural network
The ability to evaluate and quantify the quality of the neural network explanations
A deep understanding of the need and benefits of Explainable AI
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Content
1.
Introduction to Explainable AI
5 Lessons
Get familiar with Explainable AI to understand and implement transparent, interpretable AI systems.
2.
Saliency Maps
10 Lessons
Unpack the core of various saliency map techniques to interpret image classifier decisions.
3.
Class Activation Maps
6 Lessons
Work your way through Class Activation Maps, GradCAM, X-GradCAM, Eigen-CAM, and Ablation-CAM techniques.
4.
Miscellaneous Methods
6 Lessons
Apply your skills to various advanced methods for interpreting AI image classifiers.
5.
Metrics of Interpretability
7 Lessons
Dig into interpretability metrics for AI, feature agreement, rank correlation, predictive faithfulness, and fairness.
Certificate of Completion
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