Open Postdoctoral Positions
We are an interdisciplinary team at the Chair of Safety, Performance and Reliability for Learning Systems, and we are looking for exceptional postdoctoral researchers to join our team. The postdoctoral positions will be full-time (100%, TV-L E13). We are committed to fostering a diverse and inclusive research environment, and we strongly encourage candidates from underrepresented groups to apply. The review process is on a rolling basis. Please refer to the “Application Procedure” section for details on how to apply.
Current PostDoc Openings
Position Posted on December 15, 2025
Application Deadline 30.01.2026
Robots that learn from data promise greater autonomy and performance, but their deployment in the real world hinges on the ability to guarantee safety, reliability, and consistent behavior. Learning-based controllers can achieve high performance in complex and uncertain environments, yet ensuring predictable operation under distribution shifts, sensor noise, and unmodeled dynamics remains a key challenge. This position focuses on developing and validating methods that jointly address safety, performance, and reliability of learning-based control and decision-making algorithms on real robotic systems operating in unstructured and dynamic environments.
This work is connected to the Robotics Institute Germany (RIG) and relates to the thematic cluster Safety, Reliability and Resilience of AI-based Robotics. The successful candidate will have the opportunity to engage with the RIG network, collaborate with academic and industrial partners, and contribute to joint research activities, publications, and surveys.
Unsolicited Application
At the Learning Systems and Robotics Lab, we pioneer cutting-edge advancements in robot control, machine learning, and multi-robot systems to enable safe, adaptive operations in real-world, uncertain environments—from mobile manipulation to robotic swarms. We are always looking for excellent researchers with a strong interest in academic research and a PhD degree from a top-ranked institution in a relevant field, such as robotics, AI, or computer science. If you are passionate about tackling interdisciplinary challenges in these areas but our current active openings do not fit your particular interests, please submit an unsolicited application.
Requirements
- PhD degree (or near completion) in robotics, control, machine learning, or a related field;
- Strong publication record demonstrating independent and creative research;
- Solid programming experience in C++ and/or Python, and familiarity with modern robot learning frameworks;
- Proven expertise in one or more of the following areas: robot learning, safety-critical control, probabilistic modeling, verification, or optimization;
- Excellent communication skills in English and the ability to work both independently and collaboratively in an interdisciplinary team;
- Prior experience with real robotic systems and deployment of learning-based controllers.
If you do not satisfy all requirements but are very interested in the position, please feel free to apply and/or reach out to us for questions.
Application Procedure
Please submit your application package via the following link: http://tiny.cc/lsy-postdoc-applications
In the application form, you will be asked to include the following documents:
- A personal statement outlining research interests, achievements, and future goals;
- An academic CV including a full list of publications;
- Copies of relevant transcripts and degree certificates;
- Contact information of three referees;
- Any additional supporting documents you would like to share with us.
If you have any questions regarding the open positions or the application process, please contact us at contact.lsy(at)xcit.tum.de and ensure that the posting ID (e.g., TUEILSY-POSTDOC20251103-SRL) is indicated in the subject line.