Summer Semester 2026
Bachelor
Projektgruppen
Maschinelles Lernen
Bachelor BA-INF 051
Lecturers
Contact
Details
Preliminary Meeting
Donnerstag, 16. April 2026
15 Uhr s.t.
Institut für Informatik
Raum 3.110
Participants
max. 6
Prerequisites
keine
Registration
Vorlesungen
Grundlagen der künstlichen Intelligenz I
Bachelor BA-INF 160
Dieses Modul ist dem maschinellen Lernen gewidmet, einem der wichtigsten Bereiche der
künstlichen Intelligenz. Die Studierenden lernen, implementieren und üben die wichtigsten
Algorithmen des maschinellen Lernens. Das Modul konzentriert sich auf die Kernaufgaben des
prädiktiven Lernens aus Beispielen und des Agentenlernens und lehrt die wichtigsten Klassen
von Algorithmen für diese Aufgaben. Am Ende des Moduls sind die Studierenden in der Lage,
geeignete Methoden und Systeme für spezifische Anwendungen des prädiktiven Lernens
auszuwählen, einzusetzen und, wenn nötig, anzupassen oder weiterzuentwickeln.
Inhalte:
Verschiedene Arten von Lernproblemen, wichtige nicht-parametrische und parametrische
Methoden für überwachtes Lernen (z.B., Konzeptlernen als Suche in geordneten
Hypeothesenräumen, lernen von Entscheidungsbäumen, probabilistische Ansätze, Kernel-
Methoden, lineare und logistische Regression, gradient descent, neuronale Netze, deep
learning), Lerntheorie.
Lecturers
Contact
Details
Vorlesung - Start
16. April 2026
donnerstags, 12:15 - 13:45
Friedrich-Hirzebruch Allee 5 - Hörsaal 2
Übungen - Start
23. April 2026
donnerstags
Gruppe I: 14:15 - 15:45 Uhr, Room 1.047
Gruppe II: 14:15 - 15:45 Uhr, Room 2.025
Tutoren
Felix Müller, Denis Schafranski
Prerequisites
Grundlagen der Wahrscheinlichkeitstheorie; alle erforderlichen Grundlagen werden in der Übung am 23.04.2026 vermittelt.
Registration
Bitte registrieren Sie sich für den Kurs in eCampus (s. den Button unten) und folgen Sie den Anweisungen in eCampus.
Important Dates
14.08.2026, 10:00 - 12:00
HS X (im Hauptgebäude)
30.09.2026, 10:00 - 12:00
HS X (im Hauptgebäude)
Master
Lectures
Reinforcement Learning
Master MA-INF 1224
Klicken Sie hier, um einen Text einzugeben.
Lecturers
Contact
Details
Lecture - Start/Time/Place
13 April 2026
Mondays, 12:15 - 13:45
Hörsaal IV, Meckenheimer Allee 176
Exercises - Start/Time/Place
TBD
Fridays, 14:15 - 15:45
Hörsaal IV, Meckenheimer Allee 176
Registration
Please register in ecampus
Important Dates
tba
Seminars
Principles of Data Mining and Learning Algorithms: Selected Papers from the state-of-the-art
Master: MA-INF 4209
The seminar will held as a block seminar. Further seminar dates will be announced during the preliminary meeting.
Lecturers
Prof. Dr. Stefan Wrobel, Dr. Tamas Horvath, PD Dr. Michael Mock
Contact
Details
Preliminary Meeting
Friday, 24 April 2026
11:00 h (s.t.) - 12:00 h
Final Meeting (tentative):
Wednesday, 15 July 2026
09:00 h (s.t.) - 13:00 h
Participants
max. 6
Prerequisites
none
Registration
Attending the preliminary meeting is mandatory.
Bridging Philosophy and AI: Theories of Explanation and Explainability in Deep Learning
Master: MA-INF 4209
As machine learning models become more and more sophisticated, there is growing interest in finding ways to explain their behavior to make it less opaque and more understandable. But what is an explanation? What does it mean to explain something or to understand it? In this seminar we study philosophical theories of scientific explanation and understanding and explore how to apply them to computational approaches to explainability for deep learning and other neural network architectures. The seminar does not presume a deep background in philosophy or technical training in AI, and is suitable for all students of computer science or philosophy who would like to learn more about how philosophical ideas relate to developments in AI.
Contact
Details
Meetings
Wednesdays 14:00-16:00
Preliminary Meeting:
Wednesday, April 15, 2026
14:00-15:00
Institut für Informatik, Room 2.025
Friedrich-Hirzebruch-Allee 8
Participants
max. 10
Prerequisites
none
Registration
If you are interested in attending the preliminary meeting please send an email to: bbalcera@cs.uni-bonn.de.
Labs
Development and Application of Data Mining and Learning Systems: Machine Learning
Master: MA-INF 4306
Contact
Details
Preliminary Meeting
Wednesday 15, April 2026
10:00 h s.t.
Slides: Preliminary Meeting
Room 1.047,
Friedrich-Hirzebruch-Allee 8
Participants
max. 5
Prerequisites
Klicken Sie hier, um einen Text einzugeben.
Registration
For more information please check eCampus.
Development and Application of Data Mining and Learning Systems: Data Mining
Master: MA-INF 4306
Contact
Details
Preliminary Meeting
Wednesday 15, April 2026
10:00 h s.t.
Slides: Preliminary Meeting
Room 1.047,
Friedrich-Hirzebruch-Allee 8
Participants
max. 5
Prerequisites
Registration
For more information please check eCampus.
Development and Application of Data Mining and Learning Systems: Topics on Amortization in Deep Learning
Master: MA-INF 4306
(In Basis: Lab Development and Application of Data Mining and Learning Systems: Neural ODEs)
Preliminary Meeting Slides (pw: mlai) Write Ramsés and Patrick ASAP, if you want to participate. Important: Remember to officially register in BASIS as well!
The traditional machine learning paradigm fits individual, specialized models for every dataset anew. Recent advances in deep learning have enabled an attractive alternative: Amortized Inference. In this paradigm, large neural networks are pre-trained to process entire datasets to solve a machine learning problem. Thus, laborious retraining of individual models is replaced by a single forward pass of a pre-trained network. The amortized paradigm has already been applied to many areas, including tabular data tasks, causal inference, Bayesian optimization and dynamical system discovery
The goal of this lab is to understand the mechanism of these amortized methods. In controlled experiments, we will investigate the inference algorithms they learn and how they are implemented by the neural network.
We ask you to present intermediate results during semi-regular meetings and compile your results into a final report. Depending on general interest, you may work on these projects in groups or on your own.
We will reintroduce the amortized inference paradigm, provide an overview of the experiments we want you to run and more information about the structure of this lab during a preliminary meeting. The preliminary meeting will be held in-person at 2pm c.t. on 15.04.26 in Room 3.110 at the BIT.
Requirements: working knowledge of machine learning libraries like PyTorch or Jax.
Lecturers
Contact
Details
Preliminary Meeting
15 April 2026, 2pm c.t.
Room 3.110 at the BIT
Participants
max. 6
Prerequisites
Working knowledge of machine learning libraries like PyTorch or Jax
Registration
Discussed in Preliminary Meeting