Found 2 relevant results in 2.30s where lecturer="Michael Mühlebach"

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227-0690-11L 2020S , 2021S , 2023S , 2024S , 2025S , 2026S 4 Credits DR , MSC D-HEST , D-MAVT , D-PHYS , D-INFK , D-MATH , D-ITET

Convex optimization has revolutionized modern decision making and underpins many scientific and engineering disciplines. To enable its use in modern large-scale applications, we require new analytical methods that address limitations of existing solutions. This course is intended to provide a comprehensive overview of convex analysis and numerical methods for large-scale optimization.

2020S
2021S
2023S
2024S
2025S
263-5156-00L 2021W 2 Credits MSC , WBZ D-ITET , D-INFK , D-MATH

Many machine learning problems go beyond supervised learning on independent data points and require an understanding of the underlying causal mechanisms, the interactions between the learning algorithms and their environment, and adaptation to temporal changes. The course highlights some of these challenges and relates them to state-of-the-art research.