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227-0422-00L 2 Credits MSC D-ITET
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Deep Generative Models

Lecturers & Examiners: Dr. Ertunc Erdil
VVZ CR n/a

Last Updated: 2026-06-01 11:33:22

Abstract

This course offers an in-depth exploration of deep generative models, focusing on foundational concepts, practical implementation, and the latest advancements in the field. Students will learn about key models such as Variational Autoencoders (VAEs), Generative Adversarial Networks (GANs), and diffusion models, gaining both theoretical knowledge and hands-on experience.

Objective

By engaging with real-world applications and cutting-edge research, students will develop a comprehensive understanding of the capabilities and limitations of deep generative models. By the end of this course, students will have developed a solid understanding of the core principles and theoretical underpinnings of deep generative models. They will be able to implement and train different types of generative models, evaluate their performance, and critically analyze their strengths and limitations. Students will also learn to apply these models to practical, real-world problems, demonstrating their ability to innovate and think creatively. Furthermore, the course aims to keep students informed about the latest trends and research in the field, enabling them to stay current and contribute meaningfully to advancements in deep generative modeling.

Content

The course content covers a wide range of topics related to deep generative models. It begins with the theoretical foundations of generative modeling, including detailed examinations of VAEs, GANs, diffusion models, and normalizing flows. Students will explore the objective functions, training procedures, and data generation capabilities of these models. The course also touches upon practical aspects including implementing and training these models using popular deep learning frameworks like TensorFlow and PyTorch. Additionally, students will work on projects and assignments that apply these models to various domains such as image generation and natural language processing

General Information

Language
English
Levels
MSC
Frequency
Yearly recurring

Examination

Type
session examination
Mode
written 90 minutes
Aids
None

Course Components

Type Title Time & Place Hours
lecture Deep Generative Models
  • Thu 14:15-16:00 (HG E 33.1)
2 h weekly

Offered In