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Mathematical Methods of Machine Learning and Data Science

Abstract of the Lecture

The lecture introduces basic mathematical methods required to understand both classical approaches and their connection to the ingredients of deep learning architectures: convolution and mathematical signal processing, data embedding and the impact of high dimensions, randomization and concentration of measure, measure transport, elementary Riemannian geometry and flows realized by networks.