Size: 1740
Comment:
|
Size: 1396
Comment:
|
Deletions are marked like this. | Additions are marked like this. |
Line 8: | Line 8: |
|| Credits || 3 ECTS, Elective in the modules "Machine Learning I/II", "Deep Learning I/II", and "Cognitive Algorithms" || | |
Line 15: | Line 14: |
* Federated Learning and Federated Data Preparation. | * Federated and Deep Ensemble Learning. |
Line 17: | Line 16: |
* Compression of ML Systems: From pruning through knowledge distillation to quantization. | * Compression of ML Systems. |
Line 21: | Line 20: |
* Scalable Bayesian Learning. | |
Line 24: | Line 22: |
''' This seminar cannot be taken as a standalone course. It can only be taken as part of ML-X, DL-X, or CA.''' |
Joint Seminar on Machine Learning and Data Management Systems
Date |
First meeting: Tuesday 01.06.2022, 14-15, Presentation: TBA |
Room |
First meeting: Via Zoom (TBA), Presentation: MAR4.033 |
Trainers |
Matthias Böhm, Dennis Grinwald |
Contact |
This is a joint research-oriented seminar of the Machine Learning Group and the Data Management Group. Throughout the seminar, students will have the opportunity to learn about recent advances in the intersection of Machine Learning and Data Management Systems.
Interested students are required to participate in the kick-off meeting after which they will select, read, understand, and (if possible) programmatically evaluate one of the eligible papers (TBA), before giving a final 10-15 min presentation in the English language at the end of the semester. More details will be discussed during the Kick-off meeting.
Example topics include:
- Federated and Deep Ensemble Learning.
- Carbon-aware data management systems and Machine Learning.
- Compression of ML Systems.
- Continual, Lifelong, and Online Learning.
- Data management systems for Lifelong Learning.
- Hashing and sketches.
- Building ML pipelines for large large scale data preparation, model training and model debugging, versioning, and monitoring.
- AutoML.