Introduction to Probabilistic Machine Learning (ST 2025) - tele-TASK
Introduction to Probabilistic Machine Learning (ST 2025) - tele-TASK
Dr. Rainer Schlosser
Probabilistic machine learning has gained a lot of practical relevance over the past 15 years as it is highly data-efficient, allows practitioners to easily incorporate domain expertise and, due to the recent advances in efficient approximate inference, is highly scalable. Moreover, it has close relations to causal inference which is one of the key methods for measuring cause-effect relationships of machine learning models and explainable artificial intelligence. This course will introduce all recent developments in probabilistic modeling and inference. It will cover both the theoretical as well as practical and computational aspects of probabilistic machine learning. In the course, we will implement all the inference techniques and apply them to real-world problems.
Bayesian Ranking
May 19, 2025
1 hr 31 min
Video
Graphical Models: Approximate Inference
May 12, 2025
1 hr 29 min
Video
Graphical Models: Exact Inference
May 5, 2025
1 hr 29 min
Video
Graphical Models: Independence
Apr 28, 2025
1 hr 23 min
Video
Inference & Decision Making
Apr 14, 2025
1 hr 31 min
Video
History & Probability
Apr 7, 2025
1 hr 25 min
Video