Institute for Statistics and Foundations of Machine Learning
With around 16,000 students and 3,800 employees, the Technische Universität Braunschweig is one of Germany’s leading institutes of technology. It stands for strategic and performance-oriented thinking and acting, relevant research, committed teaching, and the successful transfer of knowledge and technologies to the economy and society. We consistently advocate for family friendliness and equal opportunities.
Our research focuses are mobility, engineering for health, metrology, and city of the future. Strong engineering and natural sciences are our core disciplines. These are closely interconnected with economics, social and educational sciences and humanities.
Our campus is located in the midst of one of the most research-intensive regions in Europe. We work successfully together with over 20 research institutions in our neighborhood as we do with our international partner universities.
The newly founded Institute for Statistics and Foundations of Machine Learning at TU Braunschweig is looking for applicants for an PhD position in the field of Statistical Learning Theory to be filled as soon as possible.
PhD Position (m/f/d) in the BMFTR-funded Research Project MEDICOP (EG 13 TV-L, 66%)
The position is offered for an initial period of three years and provides the opportunity to pursue a doctoral degree.
The research area of Statistical Learning Theory investigates the mathematical foundations of learning from data. A central focus lies on the development and theoretical analysis of modern learning algorithms with provable statistical performance guarantees, in particular under uncertainty, finite sample sizes, and noisy or high-dimensional data. Core research questions include generalization, stability, regularization, and optimal convergence rates of learning algorithms (e.g. kernel methods or neural networks), as well as the quantification and calibration of statistical uncertainty.
The BMFTR-funded collaborative research project MEDICOP – Medical Efficiency via Data-Driven Intelligent Control, Optimization and Planning addresses key challenges in achieving efficient, safe, and robust medical care. The goal of the project is to develop new mathematical and data-driven methods to support clinical decision-making processes as well as to optimize medical robotic applications. Through close collaboration with clinical and industrial partners, MEDICOP contributes to the transfer of mathematical innovations into practice-oriented, clinically deployable solutions.
Your Responsibilities:
Required Qualifications:
Desirable Qualifications:
Our Benefits:
Further notes
We welcome applicants of all nationalities. At the same time, we encourage people with severe disabilities to apply. Applications from severely disabled persons will be given preference if they are equally qualified. Please attach a proof of disability to your application. We are also working on the fulfilment of the Central Equality Plan based on the Lower Saxony Equal Rights Act (Niedersächsisches Gleichberechtigungsgesetz—NGG) and strive to reduce under-representation in all areas and positions as defined by the NGG. Therefore, applications from women are particularly welcome in this case.
The personal data will be stored for the purpose of processing the application. By submitting your application, you agree that your data may be stored and processed electronically for application purposes in compliance with the provisions of data protection law. Further information on data protection can be found in our data protection regulations at www.tu-braunschweig.de/datenschutzerklaerung-bewerbungen. Application costs cannot be reimbursed.
Questions, Applications
For more information, please contact Prof. Dr. Nicole Mücke (nicole.muecke(at)tu-braunschweig.de
Please prepare your application in German or English as a single PDF document consisting of the following:
The deadline for the application is February 27th, 2026
Please send your application, preferably by email, to nicole.muecke(at)tu-braunschweig.de
vom: 15.01.2026
gültig bis: 27.02.2026