Mario
Koddenbrock

Mario Koddenbrock is a Ph.D. candidate at HTW Berlin under the supervision of Prof. Dr. Erik Rodner. He holds an M.Sc. in Mathematics from FU Berlin and focuses on machine learning and computer vision.

Mario Knoddenbrock profile picture

Mario’s academic background includes a thesis in numerical analysis on steady Navier-Stokes equations. He then spent over ten years at a research institute for applied computer science, where he worked on machine learning for real-world applications. His research during this time focused on noise and vibration analysis as well as computer vision, developing data-driven methods for signal processing, pattern recognition, and visual inspection under challenging conditions such as high noise levels, limited labeled data, and domain shifts.
Currently, his doctoral research concentrates on the adaptation and robustness of pretrained foundation models, particularly in vision domains. A central aim of his work is to enable these models to perform reliably in specialized application areas where annotated data is scarce or expensive to obtain. To achieve this, he investigates approaches such as high-quality synthetic data generation and efficient model adaptation strategies.