NYU Deep Learning - Spring 2020

NYU Deep Learning - Spring 2020

Alfredo Canziani via YouTube Direct link

Week 11 – Lecture: PyTorch activation and loss functions

20 of 31

20 of 31

Week 11 – Lecture: PyTorch activation and loss functions

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Classroom Contents

NYU Deep Learning - Spring 2020

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  1. 1 Week 1 – Lecture: History, motivation, and evolution of Deep Learning
  2. 2 Week 1 – Practicum: Classification, linear algebra, and visualisation
  3. 3 Week 2 – Lecture: Stochastic gradient descent and backpropagation
  4. 4 Week 2 – Practicum: Training a neural network
  5. 5 Week 3 – Lecture: Convolutional neural networks
  6. 6 Week 3 – Practicum: Natural signals properties and CNNs
  7. 7 Week 4 – Practicum: Listening to convolutions
  8. 8 Week 5 – Lecture: Optimisation
  9. 9 Week 5 – Practicum: 1D multi-channel convolution and autograd
  10. 10 Week 6 – Lecture: CNN applications, RNN, and attention
  11. 11 Week 6 – Practicum: RNN and LSTM architectures
  12. 12 Week 7 – Lecture: Energy based models and self-supervised learning
  13. 13 Week 7 – Practicum: Under- and over-complete autoencoders
  14. 14 Week 8 – Lecture: Contrastive methods and regularised latent variable models
  15. 15 Week 8 – Practicum: Variational autoencoders
  16. 16 Week 9 – Lecture: Group sparsity, world model, and generative adversarial networks (GANs)
  17. 17 Week 9 – Practicum: (Energy-based) Generative adversarial networks
  18. 18 Week 10 – Lecture: Self-supervised learning (SSL) in computer vision (CV)
  19. 19 Week 10 – Practicum: The Truck Backer-Upper
  20. 20 Week 11 – Lecture: PyTorch activation and loss functions
  21. 21 Week 11 – Practicum: Prediction and Policy learning Under Uncertainty (PPUU)
  22. 22 Week 12 – Lecture: Deep Learning for Natural Language Processing (NLP)
  23. 23 Week 12 – Practicum: Attention and the Transformer
  24. 24 Week 13 – Lecture: Graph Convolutional Networks (GCNs)
  25. 25 Week 13 – Practicum: Graph Convolutional Neural Networks (GCN)
  26. 26 Week 14 – Lecture: Structured prediction with energy based models
  27. 27 Week 14 – Practicum: Overfitting and regularization, and Bayesian neural nets
  28. 28 Week 15 – Practicum part A: Inference for latent variable energy based models (EBMs)
  29. 29 Week 15 – Practicum part B: Training latent variable energy based models (EBMs)
  30. 30 Matrix multiplication, signals, and convolutions
  31. 31 Supervised and self-supervised transfer learning (with PyTorch Lightning)

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