The SDU Adaptive Intelligence Lab (ADIN Lab) (https://adinlab.github.io/) located under the Data Science and Statistics Section of the Department of Mathematics and Computer Science (IMADA) at the University of Southern Denmark invites applications for a postdoctoral research fellowship position within the field of neuro-morphic reinforcement learning to be filled earliest by 1 October 2026 for a period of two years.
About the Project:
The successful candidate will advance the algorithmic and theoretical foundations of reinforcement learning applied to complex, high-dimensional dynamical systems. The project focuses on the intersection of deep reinforcement learning, probabilistic modeling, and bio-inspired architectures (such as Spiking Neural Networks) to achieve sample- and energy-efficient robust and adaptive control under uncertainty and non-stationarity. The postdoc will be responsible for proving theoretical guarantees (e.g., convergence, stability, or sample complexity) for control tasks in non-stationary environments with application to adaptive robotic systems and embodied AI, while translating these insights into scalable, high-fidelity simulation implementations.
Research Environment:
IMADA uniquely brings mathematicians and computer scientists together within a single department to foster theoretically well-backed, high-quality data science research. The department is home to numerous externally funded research projects, and the Data Science and Statistics Group serves as a vibrant synergy platform for experts across fields. The successful candidate will join the ADIN Lab, collaborate on publishing at top-tier venues (NeurIPS, ICML, ICLR, AISTATS), and fulfill standard teaching assistantship duties.
Expected Skills and Qualifications:
We are seeking a candidate with a strong desire to make significant contributions to fundamental machine learning research, possessing a combination of mathematical maturity and advanced engineering skills:
Education: A PhD in Computer Science, Mathematics, Statistics, or Theoretical Physics at the time of employment.
Publication Track Record: At least two first-author research papers at flagship venues of core machine learning research (e.g., NeurIPS, ICML, ICLR, AISTATS).
Theoretical Rigor: A deep understanding of reinforcement learning foundations, with the ability to perform convergence and finite-sample analysis of complex, non-linear continuous control algorithms.
Implementation Expertise: Outstanding scientific programming skills (Python, PyTorch/JAX) with a proven track record of developing, debugging, and scaling complex RL pipelines or custom simulation environments. Clean public repositories or released source code from past publications is a strong plus.
Algorithmic Breadth: Familiarity with probabilistic machine learning, distributional reinforcement learning, or bio-inspired neural architectures is highly desirable.
Communication: Excellent spoken and written communication skills in English.
Application deadline: 31 August 2026 at 23:59 hours local Danish time
Please see the full call, including how to apply, on www.sdu.dk
| Firma | Syddansk Universitet Følg |
| Arbejdsadresse | Campusvej |
| Postnr.: | 5230 |
| Kommune | Odense |
| Ansøgningsfrist | 31/08/2026 |