IFT 6135B - Representation Learning

Winter 2024, A Deep Learning Course offered by the Université de Montréal

IFT6135-H24 DIRO, Université de Montréal

Course Description:

This is a course on representation learning in general and deep learning in particular. Deep learning has recently been responsible for a large number of impressive empirical gains across a wide array of applications including most dramatically in object recognition and detection in images and speech recognition.

In this course we will explore both the fundamentals and recent advances in the area of deep learning. Our focus will be on neural network-type models including convolutional neural networks and recurrent neural networks such as LSTMs. We will also review recent work on attention mechanism and efforts to incorporate memory structures into neural network models. We will also consider some of the modern neural network-base generative models such as Generative Adversarial Networks and Variational Autoencoders. 

The course will use the textbook: Deep Learning by Ian Goodfellow, Yoshua Bengio and Aaron Courville (available for order at amazon or online for free here).

In particular topics covered by the course include the following:

Instruction style: The lecture time will be devoted to traditional lectures. Students are responsible for keeping up-to-date with the course material outside of class time, mainly by reading the textbook and other readings assigned for each lecture. The material to be reviewed for each class will be made available on this course website, including (this year) videos from the lectures.

Evaluation: 

The course will include a set of 3 assignments. Each assignment will consist of two components: 

See the Assignment Policy for more information. 

In addition to these assignments there will be a final exam.  Both the practical and theoretical component of the assignments is to be done individually.

The final grade will be composed as follows:

Instructors:


Previous Exams: 

Warning: material changes from year to year. This year's exam will be entirely  short answer / multiple choice / true-false questions.