PhD Position in Transportation Analytics
PhD Position in Transportation Analytics
PhD Position in Transportation Analytics
PhD Position in Transportation Analytics
Technische Universität München
Fach- und Hochschulen
München
- Art der Anstellung: Teilzeit
- 48.000 € – 64.500 € (von XING geschätzt)
- Vor Ort
- Zu den Ersten gehören
PhD Position in Transportation Analytics
Über diesen Job
(advanced statistical and computational methods for transportation systems analysis)
PhD Position in Transportation Analytics
15.08.2025, Wissenschaftliches Personal
For the Unit for Data Science in Management of the TUM School of Management at the Heilbronn Data Science Center at the TUM Campus Heilbronn, we are looking for a part time position (75%) for an initial period of three years as soon as possible:
About us
The TUM
Campus in Heilbronn is part of the renowned Technical University of Munich,
which is one of the best universities in Europe. Top performance in research
and teaching, interdisciplinarity and talent promotion are its hallmarks. In
addition, it has strong alliances with companies and scientific institutions
around the world. TUM is one of the first three universities of excellence in
Germany. The TUM School of Management is also the first management school at a
technical university in Germany to receive Triple Crown accreditation.
Worldwide, only about 80 institutions (about 1%) can boast this distinction. The Heilbronn Data Science Center is a research
institution of TUM Campus Heilbronn that uses data to answer relevant questions
and solve real-world problems. It brings together fundamental, methodologically
driven research in optimization, machine learning, and artificial intelligence
with application-oriented research that unlocks the potential of data through
rigorous analysis – advancing solutions in societally relevant domains.
Your profile
- Master’s degree in Statistics, Industrial Engineering, Operations Research, Civil Engineering, Computer Science, Data Science or a related field, from a university/department with a strong international research reputation
- Strong mathematical and analytical skills for model formulation and optimization
- Demonstrated research potential, ideally with a track record of publications in relevant venues (journals such as IEEE T-ITS, INFORMS Transportation Science, Transportation Research Part B, or conferences such as SIGKDD, ITSC, CIKM)
- Strong programming skills in Python
- Strong interest in scientific research with the goal of obtaining a doctoral degree
- High motivation and enthusiasm for working in an interdisciplinary research environment
Research focus :
The successful candidate will conduct research on data-driven modeling of transportation systems, using techniques such as:
- High-dimensional data mining
- Tensor decomposition
- Causal inference
- Statistical process modeling
- Machine Learning
Applications include public transport, private vehicles, traffic infrastructure, and emerging mobility solutions (e.g., electric vehicles, e-scooters, drones).
We offer
- Self-determined work related to interdisciplinary research projects
- A diverse and inclusive working environment
- The opportunity to work in a vibrant scientific environment
- The possibility to partially work from home as well as a modern, well-equipped workplace on the B ildungscampus Heilbronn
- Access to advanced training opportunities for professional development
About our group:
Prof. Dr. Ziyue Li holds the Professorship in Transportation Analytics in the Department of Operations & Technology and Heilbronn Data Science Center at the Technical University of Munich, Germany. His research focuses on spatiotemporal data mining, with applications in smart transportation and smart cities, emphasizing generalizability, reliability, and robustness. Prof. Li has authored over 40 papers in top-tier AI and machine learning conferences and journals. Ranked among the Top 50 researchers in "Spatiotemporal Data Mining” and "Smart Mobility” (Google Scholar), he has received multiple prestigious international awards, including the IEEE CASE Best Conference Paper Award, INFORMS QSR Best Student Paper Award, and INFORMS DM Best Applied and Best Theoretical Paper Awards. Beyond academia, Dr. Li has extensive industrial experience and collaboration with Microsoft, The Bell Labs, Hong Kong Mass Transit Railway Co., and other leading corporates.
Transportation data are inherently spatial, temporal, multi-modal, and high-dimensional. Our work addresses the challenges of Perception, Decision, and Explanation (PDE) in complex transport systems:
- Perception: Developing robust models to handle noisy, complex spatiotemporal data, integrating physical constraints, and generalizing from limited labels.
- Decision: Designing adaptive, automated decision-making tools (e.g., traffic signal control, human–vehicle coordination, logistics optimization, route planning) using reinforcement learning in dynamic environments.
- Explanation: Building interpretable causal models to explain patterns (e.g., congestion dynamics), enabling transparency in high-stakes decision-making.
We combine statistical data mining, deep learning, and domain knowledge to design models that adapt to the physical realities of transportation systems, with the ability to generalize to new tasks and datasets. For more information about the research group, please refer to: https://bonaldli.github.io/
Application process
We look forward to receiving your application documents (one-page letter outlining your motivation and research plan, transcripts of records, CV, IELTS/ TOEFL/GRE certificates if available, other certificates) by September 30, 2025, as a single PDF document via e-mail to jobs.udsm@mgt.tum.de (contact person: Ms. Elke Kröber) using the subject "PhD Transportation Analytics ”.
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