"Research for a life without cancer" is our mission at the German Cancer Research Center. We investigate how cancer develops, identify cancer risk factors, and look for new cancer prevention strategies. We develop new methods with which tumors can be diagnosed more precisely and cancer patients can be treated more successfully. Every contribution counts - whether in research, administration, or infrastructure. This is what makes our daily work so meaningful and exciting.
Together with university partners at seven renowned partner sites, we have established the German Cancer Consortium (DKTK).
For the Research Group "Machine Learning in Oncology" (headed by Prof. Dr. Florian Buettner) at the DKTK partner site Frankfurt/Mainz and the Goethe University Frankfurt, we are seeking a motivated candidate for the next possible date.
The Buettner lab (https://mlo-lab.github.io) works on the intersection of machine learning and oncology and is actively pursuing original research in both areas. Your MSc research at the intersection of machine learning and chemistry will explore how machine learning solutions can be used for uncertainty-aware predictive analysis of chemical data.
Join us for an exciting collaborative project where we will investigate the interplay of different types of model uncertainty on active learning tasks in the context of chemical data. Your MSc thesis will focus on building and applying an active learning framework explicitly leveraging decompositions of model uncertainty into aleatoric and epistemic components. In collaboration with Bayer AG, you will apply these models to real-world chemical data.
The candidate will closely interact with other researchers; therefore, good English communication skills are also required.
Then become part of the DKFZ and join us in contributing to a life without cancer!
Prof. Dr. Florian Büttner
Phone: +49 173 4613687
The position is limited to 6 months.
30.01.2025
Applications by e-mail cannot be accepted.
We are convinced that an innovative research and working environment thrives on the diversity of its employees. Therefore, we welcome applications from talented people, regardless of gender, cultural background, nationality, ethnicity, sexual identity, physical ability, religion, and age. People with severe disabilities are given preference if they have the same aptitude.
Notice: We are subject to the regulations of the Infection Protection Act (IfSG). Therefore, all our employees must provide proof of immunity against measles.