Introduction to Machine Learning - Spring 2019 - University of Waterloo

Introduction to Machine Learning - Spring 2019 - University of Waterloo

Pascal Poupart via YouTube Direct link

CS480/680 Lecture 23: Normalizing flows (Priyank Jaini)

30 of 31

30 of 31

CS480/680 Lecture 23: Normalizing flows (Priyank Jaini)

Class Central Classrooms beta

YouTube videos curated by Class Central.

Classroom Contents

Introduction to Machine Learning - Spring 2019 - University of Waterloo

Automatically move to the next video in the Classroom when playback concludes

  1. 1 CS480/680 Lecture 1: Course Introduction
  2. 2 CS480/680 Lecture 2: K-nearest neighbours
  3. 3 CS480/680 Lecture 3: Linear Regression
  4. 4 CS480/680 Lecture 4: Statistical Learning
  5. 5 CS480/680 Lecture 5: Statistical Linear Regression
  6. 6 CS480/680 Lecture 6: Tools for surveys (Paulo Pacheco)
  7. 7 CS480/680 Lecture 6: Kaggle datasets and competitions
  8. 8 CS480/680 Lecture 6: Normalizing flows (Priyank Jaini)
  9. 9 CS480/680 Lecture 6: Unsupervised word translation (Kira Selby)
  10. 10 CS480/680 Lecture 6: Fact checking and reinforcement learning (Vik Goel)
  11. 11 CS480/680 Lecture 6: Sum-product networks (Pranav Subramani)
  12. 12 CS480/680 Lecture 6: EM and mixture models (Guojun Zhang)
  13. 13 CS480/680 Lecture 6: Model compression for NLP (Ashutosh Adhikari)
  14. 14 CS480/680 Lecture 7: Mixture of Gaussians
  15. 15 CS480/680 Lecture 8: Logistic regression and generalized linear models
  16. 16 CS480/680 Lecture 9: Perceptrons and single layer neural nets
  17. 17 CS480/680 Lecture 10: Multi-layer neural networks and backpropagation
  18. 18 CS480/680 Lecture 11: Kernel Methods
  19. 19 CS480/680 Lecture 12: Gaussian Processes
  20. 20 CS480/680 Lecture 13: Support vector machines
  21. 21 CS480/680 Lecture 14: Support vector machines (continued)
  22. 22 CS480/680 Lecture 15: Deep neural networks
  23. 23 CS480/680 Lecture 16: Convolutional neural networks
  24. 24 CS480/680 Lecture 17: Hidden Markov Models
  25. 25 CS480/680 Lecture 18: Recurrent and recursive neural networks
  26. 26 CS480/680 Lecture 19: Attention and Transformer Networks
  27. 27 CS480/680 Lecture 20: Autoencoders
  28. 28 CS480/680 Lecture 21: Generative networks (variational autoencoders and GANs)
  29. 29 CS480/680 Lecture 22: Ensemble learning (bagging and boosting)
  30. 30 CS480/680 Lecture 23: Normalizing flows (Priyank Jaini)
  31. 31 CS480/680 Lecture 24: Gradient boosting, bagging, decision forests

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.