CS 559: Deep Learning

Fall 2025

UPDATE:

Catalog Description: Overview of machine learning and its applications. Loss functions, numerical optimization and back-propagation. Fundamentals of feedforward neural networks. Modern architectures and techniques for training deep networks. Convolutional neural networks: basics, visualization, and techniques for efficient spatial localization in images. Recurrent neural networks and their variants. Applications of recurrent neural networks in language and image understanding, and image captioning. Recent advances in generative models learning, generative adversarial networks and variational auto encoders. Unsupervised and self-supervised representation learning. Deep reinforcement learning.

Recommended Books:

Assessment Methods:

Homework 20%
Literature Survey and Presentation 5% + %10
Midterm:Essay/written 30%
Project 35%

Any of the following will directly result in an F grade:

Passing Grade: No predetermined grade to pass the course.

Makeup Policy: Medical report holders will be entitled for the midterm make up. Makeup exam will be comprehensive.

Homework:
TBA

Literature Survey and Presentation:

Project:

Template for the Reports:
All reports (including homework report) must be prepared using the IEEE double-column transactions article template (i.e. "bare_jrnl.tex").

Important Dates:

Event Date / Deadline
Midterm Exam TBA
Literature Survey Proposal submission
[subject line: cs559_2025f_survey]
29 September 2025, 23:59
Literature Survey Report submission
(including the presentation)
[via Moodle]
TBA
Literature Survey Presentation TBA
Homework submission (including the report)
[via Moodle]
TBA
Project Proposal submission
[subject line: cs559_2025f_project]
1 October 2025, 23:59
Project Progress Presentation TBA
Project Final Presentation TBA
Project submission 
(including the report and presentation)
[via Moodle]
TBA

Tentative Schedule & Lecture Notes:
Lecture notes below are downloadable only within Bilkent network. Use VPN to access from home.

Week Topic Dates Lecture Notes
1
Introduction,
Basics
16 September 2025 (10:30-12:20)
18 September 2025 (15:30-17:20)
 
  
2 Loss Functions 23 September 2025 (10:30-12:20)  
 3 Optimization
Feedforward networks and training (1)


4 Feedforward networks and training (2)

5 Convolutional neural networks

6 Spatial localization and detection

7 Segmentation


8 Understanding and Visualizing CNNs


9 Recurrent Neural networks
Word Embeddings and Language Models


10 Unsupervised Learning and Generative Models,
Project Progress Presentations


11 No Lecture


12 Unsupervised Learning and Generative Models,
Midterm


13 Literature Survey Presentations

14 Deep reinforcement learning

15
Project Presentations