Handling large amounts of data is a challenge in almost all sectors of research and industry.
Our mission is to develop innovative data systems and database technologies that are able to handle different kinds of data, such as spatio-temporal trajectory data, with scalable query processing, expressive modeling, and unified interfaces for real-world applications.
Modern data systems face challenges from different formats, inherent uncertainty, and the need to query across multiple sources, which limits analysis in areas like mobility, ecology, and logistics.
Trajectory data adds to these challenges with varying storage setups, gaps between sampled points that create movement uncertainty, and a lack of common tools for space-time queries.
In the DS group, we tackle these with strong trajectory models and uncertainty-handling query methods, plus prototype systems that connect diverse sources like spatial and time-series databases.
Our research combines theoretical modeling with practical query engines, delivering extensible tools for high-performance, interactive analysis of trajectories and broader data workloads.
Loading publications...