Seminar: 5.04.4214 Advanced Models and Algorithms in Machine Learning - Details

Seminar: 5.04.4214 Advanced Models and Algorithms in Machine Learning - Details

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General information

Course name Seminar: 5.04.4214 Advanced Models and Algorithms in Machine Learning
Subtitle Schwerpunkt: Akustik und Signalverarbeitung & Medizinphysik
Course number 5.04.4214
Semester WiSe22/23
Current number of participants 13
expected number of participants 16
Home institute Institute of Physics
Courses type Seminar in category Teaching
First date Monday, 17.10.2022 08:15 - 09:45, Room: W02 2-216
Pre-requisites Knowledge in higher Mathematics including Analysis and Linear Algebra for Physicists, Mathematicians, Engineers and Computer Scientists. Knowledge in probabilistic data modelling and standard Machine Learning approaches.
Lehrsprache englisch
Miscellanea First meeting will be in W30 2-211.
ECTS points 3

Rooms and times

W02 2-216
Monday: 08:15 - 09:45, weekly (13x)

Module assignments


The students will learn about recent developments and state-of-the-art approaches in Machine Learning, and their applications to different data domains. By presenting scientific studies in the context of currently used models and their applications, they will learn to understand and communicate recent scientific results. The presentations will use computers and projectors. Programming examples and animations will be used to support the interactive component of the presentations. In scientific discussions of the presented and related work, the students will obtain knowledge about current limitations of Machine Learning approaches both on the theoretical side and on the side of their technical and practical realizations. Presentations of interdisciplinary research will enable the students to carry over their Machine Learning knowledge to address questions in other scientific domains.

In this seminar recent developments of models and algorithms in Machine Learning will be studied. Advances of established modelling approaches and new approaches will be presented and discussed along with the applications of different current algorithms to application domains including: auditory and visual signal enhancements, source separation, auditory and visual object learning and recognition, auditory scene analysis and inpainting. Furthermore, Machine Learning approaches as models for neural data processing will be discussed and related to current questions in Computational Neuroscience.

Admission settings

The course is part of admission "Anmeldung gesperrt (global)".
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The following rules apply for the admission:
  • Admission locked.