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Pre-Alpha
This lesson is in the pre-alpha phase, which means that it is in early development, but has not yet been taught.
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Trustworthy AI: Explainability, Bias, Fairness, and Safety
Trustworthy AI: Explainability, Bias, Fairness, and Safety
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Trustworthy AI: Explainability, Bias, Fairness, and Safety
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EPISODES
Summary and Setup
1. Overview
2. Preparing to train a model
3. Model evaluation and fairness
4. Model fairness: hands-on
5. Interpretablility versus explainability
6. Explainability methods overview
7. Explainability methods: deep dive
8. Explainability methods: linear probe
9. Explainability methods: GradCAM
10. Estimating model uncertainty
11. OOD detection: overview
12. OOD detection: softmax
13. OOD detection: energy
14. OOD detection: distance-based
15. OOD detection: training-time regularization
16. Documenting and releasing a model
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