Module Number ML-4503 |
Module Title Advances in Multimodal Learning |
Lecture Type(s) Seminar |
---|---|---|
ECTS | 3 | |
Work load - Contact time - Self study |
Workload:
90 h Class time:
30 h / 2 SWS Self study:
60 h |
|
Duration | 1 Semester | |
Frequency | In the summer semester | |
Language of instruction | English | |
Type of Exam | Paper presentation und written report |
|
Content | This seminar will cover most recent advancements and publications in multimodal learning, which is the integration of multiple data sources or multiple modalities for more complex machine learning applications. This can also include reviews of emerging techniques, including unsupervised approaches, deep learning, transfer learning, and reinforcement learning to combine multiple modalities such as images, audio, video, |
|
Objectives | Students gain an overview of current trends and research in multimodal Learning. After this course, students should be able to understand, reflect, and communicate over current research papers on multimodal learning. |
|
Allocation of credits / grading |
Type of Class
Status
SWS
Credits
Type of Exam
Exam duration
Evaluation
Calculation
of Module (%) |
|
Prerequisite for participation | ML-4103 Deep Learning (formerly: Deep Neural Networks; INFO-4182) | |
Lecturer / Other | Kuehne | |
Literature | - |
|
Last offered | unknown | |
Planned for | Sommersemester 2025 | |
Assigned Study Areas | INFO-INFO, MEDI-APPL, MEDI-INFO, MEDI-MEDI, MEDI-MMT, ML-CS, ML-DIV |