Deep learning

Lecturer: I. Giulini
Period: 
Term  3
ECTS: 3
Schedule: 2 hours of lecture  per week

Outline

  1. Introduction to Deep Learning
  2. Forward and backward propagation and solvers
  3. Embeddings, matrix factorization, factorization machines and recommender systems
  4. Convolutional neural networks for image classification
  5. Network architectures for object detection and image segmentation
  6. Recurrent neural networks, Long Short-Term Memory (LSTM) units for learning based on sequences
  7. Learning for sequences to sequences, attention and memory
  8. Unsupervised deep learning and generative models

Bibliographie