Deep Generative Modeling

Deep Generative Modeling

https://www.youtube.com/@AAmini/videos via YouTube Direct link

Intro

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1 of 23

Intro

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Deep Generative Modeling

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  1. 1 Intro
  2. 2 Which face is fake?
  3. 3 Supervised vs unsupervised learning
  4. 4 Why generative models? Outlier detection
  5. 5 Latent variable models
  6. 6 What is a latent variable?
  7. 7 Autoencoders: background
  8. 8 Dimensionality of latent space → reconstruction quality
  9. 9 Autoencoders for representation learning
  10. 10 VAEs: key difference with traditional autoencoder
  11. 11 VAE optimization
  12. 12 Priors on the latent distribution
  13. 13 VAEs computation graph
  14. 14 Reparametrizing the sampling layer
  15. 15 VAEs: Latent perturbation
  16. 16 VAE summary
  17. 17 Generative Adversarial Networks (GANs)
  18. 18 Intuition behind GANS
  19. 19 Progressive growing of GANS (NVIDIA)
  20. 20 Style-based generator: results
  21. 21 Style-based transfer: results
  22. 22 CycleGAN: domain transformation
  23. 23 Deep Generative Modeling Summary

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