About
Blog
Pills
Software
Trainings
Seminar
⚲
Search results
Content series
We organize our work into series. Each of the series we currently work on features a short introduction to our field of interest and a research feed.
Current series
Simulation and AI
AI techniques are fundamentally transforming the field of simulation by combining physics-based modeling with data-driven machine learning.
Data valuation
Attributions of value to training samples can be used to examine data, improve data acquisition, debug and improve models or compensate data …
Simulation-Based Inference
Simulation-based inference (SBI) offers a powerful framework for Bayesian parameter estimation in intricate scientific simulations where …
Reinforcement Learning
Recent and popular advances in Reinforcement Learning are known to be data-hungry. Attempts to handle this deficit include developing …
Formal verification under uncertainty
Being able to ensure that AI systems behave as intended is essential for their adoption in many areas. This series covers formal methods for …
Explainable AI
Large opaque models like neural networks require dedicated methods to study and interpret their behavior. In this series we review recent …
Past series
Classifier calibration
For many applications of probabilistic classifiers it is important that the predicted confidence vectors reflect true probabilities (one …
Uncertainty Quantification
Uncertainty quantification (UQ) in machine learning is the practice of measuring or estimating uncertainty in models. It is a set of tools …
Optimization in ML
Optimization is a key component of machine learning. In this series we review recent developments allowing to train larger models, faster …
Data efficiency
Numerous applications of Machine Learning in business intelligence, process optimization, product development or sales do not benefit from …
Probabilistic Models
Uncertainty permeates all aspects of real-world agency: Perception is subject to uncertainty owing to partial observability and unreliable …
Robustness in ML
The robustness of a model is a measure of its stability with respect to perturbations of the input. We investigate and review recent …
Anomaly detection
Many industrial applications of automated decision-making involve the detection of anomalous behaviour. Precisely defining what this means …
Diffusion Models
Diffusion models (DM) have become the state of the art for sample quality in generative modelling. They work by sequentially corrupting …
Geometric deep learning
Specialized deep learning architectures exploit the intrinsic regularities arising from the underlying structure of the physical world. …