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Institutes
Institute of Artificial Intelligence
Teaching
Winter 2024
Principles and Theory for Machine Learning
Winter 2024
Principles and Theory for Machine Learning
Seminar Representations for Generative AI
Principles and Theory for Machine Learning
Principles and Theory for Machine Learning
Overview
Semester
Winter 2024 ❄️
Course type
Lecture & Exercises
Lecturer
Prof. Dr. Michel Besserve
Audience
Master
Credits
5 ECTS
Hours
2 + 2
Language
English
Capacity
max. 25 Students
Description
Foundations of supervised learning
Optimization for ML
Unsupervised learning
Neural networks
Deep learning
Deep generative models
Some ML weaknesses
Interpretable-explainable AI
Self-supervised learning and foundation models
see also
Stud.IP
entry
Qualification
After successfully completing this module, students should be able to
understand and correctly apply basic concepts of machine learning,
master elementary tools for analysing the performance of machine learning approaches,
recognise the main limitations of machine learning methods,
propose strategies to overcome such limitations.
Proof of performance
1 examination: written exam, 90 minutes, or oral exam, 30 minutes, or take-home exam
1 academic achievement: 50% of the exercises must be passed
Literature
Understanding Machine Learning, Shalev-Schwartz & Ben-David, 2014
Learning Theory from First Principles, Bach, 2024
Deep Learning, Goodfellow et al., 2016
Mathematical Theory of Deep Learning, Petersen & Zech, 2024
Mathematics for Machine Learning, Deisenroth et al., 2020
Neural Networks and Deep Learning, Aggarwal, 2023 (2nd edition)
Deep Learning Architectures, Calin, 2020
Requirements
Photo credits on this page