392160 Generative models in Biomedicine (S) (SoSe 2026)

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The rapid advancement of Generative Artificial Intelligence (GenAI) has unlocked new possibilities for modelling and understanding complex biomedical data. Generative models, such as Variational Autoencoders (VAEs), Generative Adversarial Networks (GANs), and Diffusion Models, have emerged as powerful tools for tasks such as molecule generation, medical image synthesis, and biological sequence design.
The seminar will begin with a series of introductory lectures (around 4 or 5) covering the fundamentals of generative modelling and their applications in biomedical contexts. Both foundational and state-of-the-art approaches will be explored, along with their respective use cases and limitations.
These lectures will be followed by two dedicated sessions on how to write technical reports and how to deliver effective presentations.
Student seminar presentations will then take place, conducted in small groups of 1-2 students.
The course will follow a seminar+tutorial format, and as such students will:
Present a chosen paper on a generative model and its biomedical application;
Deliver a final report of around 10 pages;
Weekly submit a short summary (around 500 words) of the presentation held during that week.
The course will be entirely held in English.

Teaching staff

Dates ( Calendar view )

Frequency Weekday Time Format / Place Period  
weekly Di 16-18 U2-200 13.04.-24.07.2026

Subject assignments

Module Course Requirements  
39-Inf-BDS Biomedical Data Science for Modern Healthcare Technology Biomedical Data Science for Modern Healthcare Technology Selected seminar or project Study requirement
Student information
39-Inf-WP-CLS-x Computational Life Sciences (Focus) Computational Life Sciences (Schwerpunkt) Vertiefendes Seminar Student information
- Graded examination Student information
39-Inf-WP-DS-x Data Science (Focus) Data Science (Schwerpunkt) Vertiefendes Seminar Student information
- Graded examination Student information
39-M-Inf-ABDA Advanced Big Data Analytics / Big Data Machine Learning Advanced Big Data Analytics / Big Data Machine Learning Machine Learning and AI in Advanced Big Data Analytics Ungraded examination
Student information
39-M-Inf-ABDA_a Advanced Big Data Analytics / Big Data Machine Learning Advanced Big Data Analytics / Big Data Machine Learning Machine Learning and AI in Advanced Big Data Analytics Graded examination
Student information
39-M-Inf-AI-adv_a Advanced Artificial Intelligence Advanced Artificial Intelligence Advanced Artificial Intelligence: Seminar Graded examination
Student information
39-M-Inf-AI-app Applied Artificial Intelligence Applied Artificial Intelligence Applied Artificial Intelligence: Seminar Student information
- Graded examination Student information

The binding module descriptions contain further information, including specifications on the "types of assignments" students need to complete. In cases where a module description mentions more than one kind of assignment, the respective member of the teaching staff will decide which task(s) they assign the students.


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SS2026_392160@ekvv.uni-bielefeld.de
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Last update basic details/teaching staff:
Wednesday, January 7, 2026 
Last update times:
Friday, February 6, 2026 
Last update rooms:
Friday, February 6, 2026 
Type(s) / SWS (hours per week per semester)
seminar (S) / 2
Language
This lecture is taught in english
Department
Faculty of Technology
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662762345