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Welcome to the website of the Chair of Reliable Machine Learning

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The research group "Reliable Machine Learning" studies the properties of machine learning algorithms.
In view of the recent success of deep learning methods in applications like image recognition, speech recognition, and automatic translation, the group especially focuses on properties of deep neural networks.

Although a neural network trained e.g. for an image classification task might work well on "real inputs", it has been repeatedly shown empirically that such networks are vulnerable to adversarial examples:
a minimal perturbation (impercetible to a human) of the input data can cause the network to misclassify the input.
Thus, an important research area of the group is to mathematically understand the reasons for the existence of such adversarial examples (i.e., the instability of trained neural networks),
and - building on that understanding - to develop improved methods that yield provably robust neural networks.

The research group is supported by the Emmy Noether project "Stability and Solvability in Deep Learning".

Content of Chair of reliable machine learning

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GAMM Conference

From 18-22 March 2024, Dr. Raphael Schulz took part in the GAMM conference in Magdeburg.

At this year's 94th conference of the Society for Applied Mathematics and Mechanics, numerous scientists from international universities met to present current research results in various areas of applied mathematics and mechanics, such as fluid mechanics. In addition to interesting lectures, there were also opportunities to exchange information, ideas and the latest developments.

Dr. Schulz gave a lecture on "Degenerate flow and transport problems in porous media with vanishing porosity"

More information about the conference can be found HERE.

Mathematical Institute for Machine Learning and Data Science

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The Chair of Reliable Maschine Learning is part of the Mathematical Institute for Machine Learning and Data Science, MIDS.
Learn more about MIDS here.