Institute for Technologies and Management of Digital Transformation

Prof. Dr.-Ing. Tobias Meisen

Professor of Technologies and Management of Digital Transformation

Area of Research:

  • Deep and Machine Learning
  • Deep Reinforcement Learning
  • Explainable and Transparent Artificial Intelligence
  • Knowledge Graphs
  • Semantic Interoperability

Biography

Univ.-Prof. Dr.-Ing. Tobias Meisen has been Professor of Technologies and Management of Digital Transformation at the University of Wuppertal since September 2018. He studied computer science with a focus on data mining and data management and received his doctorate (Dr.-Ing.) with distinction. From 2015 to 2018, he held a junior professorship at RWTH Aachen University, where he conducted research within the DFG Cluster of Excellence “Integrative Production Technology for High-Wage Countries” and served as managing director of the Institute of Information Management in Mechanical Engineering.

His research focuses on digital transformation and modern information management in an increasingly connected world. A particular emphasis lies on the development of data-driven systems based on machine learning and deep learning methods, specifically tailored for industrial applications. In contrast to many traditional AI approaches that rely on large, centralized datasets, his work addresses the challenges of real-world industrial environments, where data is often distributed, heterogeneous, or incomplete. The goal is to enable robust, adaptive systems that can automate processes, support decision-making, and enhance human-machine interaction under such conditions. In addition, he investigates the structured acquisition, integration, and management of data through the development of knowledge graphs, which serve as a foundation for transparent and trustworthy industrial AI systems.

Tobias Meisen is the spokesperson of the Interdisciplinary Center for Machine Learning and Data Analytics (IZMD) at the University of Wuppertal and chair of the board of the affiliated institute SIKoM, dedicated to systems research in information, communication, and media technologies. He is also a member of the scientific advisory board of the Center for Advanced Internet Studies (CAIS). Since February 2025, he has been contributing his academic expertise as an expert member of the parliamentary commission of inquiry “Artificial Intelligence – Towards a Smart State in a Digital Society” of the State Parliament of North Rhine-Westphalia.

As co-founder of HotSprings GmbH, which was later integrated into umlaut and is now part of Accenture, Tobias Meisen brings extensive experience at the intersection of academic research, technological innovation, and practical application. His work has received several recognitions, including best paper awards and the Young Researcher Award as part of Germany’s Excellence Initiative. He is the author and co-author of numerous scientific publications and is actively engaged in national and international research and development projects in collaboration with academic and industry partners.

Publications

2022
Alves Gomes, M., Meyes, R., Meisen, P., & Meisen, T. (2022). "Will This Online Shopping Session Succeed? Predicting Customer's Purchase Intention Using Embeddings" in Proceedings of the 31st ACM International Conference on Information & Knowledge Management , New York, NY, USA : Association for Computing Machinery 2873—2882.

ISBN: 9781450392365

2021
Alves Gomes, M., Tercan, H., Bodnar, T., Meisen, P., & Meisen, T. (2021). "A Filter is Better Than None: Improving Deep Learning-Based Product Recommendation Models by Using a User Preference Filter" in 2021 IEEE 23rd Int Conf on High Performance Computing & Communications; 7th Int Conf on Data Science & Systems; 19th Int Conf on Smart City; 7th Int Conf on Dependability in Sensor, Cloud & Big Data Systems & Application (HPCC/DSS/SmartCity/DependSys) . 1278—1285.
Pomp, A., Paulus, A., Burgdorf, A., & Meisen, T. (2021). "A Semantic Data Marketplace for Easy Data Sharing within a Smart City" in Proceedings of the 30th ACM International Conference on Information & Knowledge Management , Demartini, Gianluca and Zuccon, Guido and Culpepper, J. Shane and Huang, Zi and Tong, Hanghang, Eds. New York, NY, USA : ACM 4774—4778.

ISBN: 9781450384469

Steiniger, Y., Groen, J., Stoppe, J., Kraus, D., & Meisen, T. (2021). "A study on modern deep learning detection algorithms for automatic target recognition in sidescan sonar images" , Proceedings of Meetings on Acoustics ,
Ekeris, T., Meyes, R., & Meisen, T. (2021). "Discovering Heuristics And Metaheuristics For Job Shop Scheduling From Scratch Via Deep Reinforcement Learning" in Proceedings of the 2nd Conference on Production Systems and Logistics (CPSL~2021) .