Since 2024, I have been doing my postdoc in the Yu group at UC Berkeley with Prof. Bin Yu on Deep Learning Theory and Uncertainty Quantification.
2019-2024, I did my Ph.D. advised by Prof. Josef Teichmann in the Stochastic Finance Group at ETH Zurich, and was affiliated with the ETH AI Center.
My main research interest is the mathematical theory of deep learning algorithms (in terms of their inductive bias, multi-task learning, and compressability). Additionally, I work on quantifying the epistemic and aleatoric uncertainty of deep neural networks, and I apply deep learning to market design (preference elicitation for combinatorial auctions). I also work on Neural Jump ODEs for irregularly observed time series and on compression of neural networks.
Previously, I received a B.Sc. and M.Sc. (2019) in Technical Mathematics from the Technical University of Vienna.