Applied Machine Learning in Python
Description
Real-world applications of machine learning require not only a strong theoretical foundation but also a solid knowledge of the methodologies, tools, and heuristics essential for implementing machine learning algorithms. However, the practical aspects of machine learning are often overlooked in mathematics programs. This course bridges that gap by providing students with hands-on experience in implementation and empirical analysis of machine learning algorithms — critical skills for those pursuing careers in data analysis or machine learning.
Content
The course covers fundamental topics such as linear regression, gradient descent, regularization techniques, logistic regression, support vector machines (SVMs), and basic neural networks. Additionally, the course will explore advanced optimization methods, multi-class classification strategies, and ensemble learning techniques such as boosting and bagging.
A key component of the course is extensive programming in Python, using key libraries such as NumPy, Matplotlib, Pandas, and scikit-learn. We will work with real datasets, including MNIST handwritten digits, the Boston Housing dataset, Wine dataset, etc.
Schedule and Venue
- Lecture (by Mariia Seleznova, Dr.): Wed 10-12 in room B 045.
- Exercise (by Mariia Seleznova, Dr.): Tue 14-16 in room B 045.
Creditable Modules
- MSc FiMa: WP23 „Advanced Topics in Computer and Data Science B”
- MSc Math: WP42 „Überblick über ein aktuelles Forschungsgebiet B”
Other modules and MSc programs are possible as well. Interested students should directly approach the Prüfungsamt and inform us.
Prerequisites
The course is targeted at mathematics MSc students, good knowledge of linear algebra, probability, and statistics is required. Basic knowledge of machine learning (statistical learning) theory and optimization is recommended.
Registration
Please register for the course on the moodle page: https://moodle.lmu.de/course/view.php?id=38342
The access key is aml25.