Deep Learning - Interactive curriculae of TU Ilmenau
The interactive curriculae provide information on the degree programmes offered by the TU Ilmenau.
Please refer to the respective study and examination rules and regulations for the legally binding curricula (Annex Curriculum).
You can find all details on planned lectures and classes in the course catalogue.
Please note that this page is no longer updated. All modules and study plans from PO version 2021 onwards (Bachelor and Master study programs) are now available on the Campus Portal.
| module properties Deep Learning in degree program Master Biomedical Engineering by Research 2026 | |
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| module number | 200131 |
| examination number | 220488 |
| department | Department of Computer Science and Automation |
| ID of group | 2252 (Data-intensive Systems and Visualization) |
| module leader | Prof. Dr. Patrick Mäder |
| term | winter and summer term |
| language | Englisch |
| credit points | 5 |
| on-campus program (h) | 45 |
| self-study (h) | 105 |
| obligation | elective module |
| exam | examination performance with multiple performances |
| details of the certificate | Das Modul Deep Learning mit der Prüfungsnummer 220488 schließt mit folgenden Leistungen ab:
Details zum Abschluss Teilleistung 1:
Details zum Abschluss Teilleistung 2:
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| link to Moodle course | https://moodle.tu-ilmenau.de/course/view.php?id=185" |
| teacher | Prof. Dr. Mäder, Patrick |
| signup details for alternative examinations | Dieses Modul enthält mindestens eine alternative semesterbegleitende Abschlussleistung. Bitte beachten Sie, dass diese in der Regel schon zu Beginn des Semesters, in dem diese angeboten wird, angemeldet werden muss. Über die Details und Zeiträume dazu werden Sie vom Lehrenden und/oder dem Prüfungsamt informiert. Fragen Sie gegebenenfalls unbedingt beim Lehrenden nach. This module contains at least one alternative exam part. Please note that this must usually be registered at the beginning of the semester in which it is offered. The lecturer and/or the examination office will inform you about the details and time periods. If necessary, be sure to ask the lecturer. |
| maximum number of participants | |
| previous knowledge and experience |
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| learning outcome | Professional competence gained through lectures and examined through written exam:
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| content | Deep learning has revolutionized a variety of application like speech recognition, image classification, language translation, as well as text and image generation. Today, deep learning techniques are applied for solving an ever-increasing variety of problems. This course will give you detailed insight into deep learning, introducing you to the fundamentals as well as tools and methods in this rapidly emerging field. Deep learning thereby refers to a subset of machine learning algorithms that analyze data in succeeding stages, each operating on a different representation of the analyzed data. Specific to deep learning is the ability to automatically learn these representations rather than relying on domain expert for defining them manually. The course will teach you the theoretical foundations of deep neural networks, which will provide you with the understanding necessary for adapting and successfully applying deep learning on your own to implement, parametrize and apply a variety of neural network architectures for modelling different data modalities and solving a variety of problems. |
| media of instruction and technical requirements for education and examination in case of online participation |
Technical Requirements
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| literature / references |
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| evaluation of teaching | |

