Predictive In-memory Multi-Level Indexing Algorithm for Spatiotemporal Trajectory Streams in Distributed Environments
Project information
- Category: Master's thesis
- Location: University of Minnesota - Duluth | Duluth, MN
08/2022 - 07/2024
Trajectory analysis has received significant contributions in recent years. With the rapid explosion of GPS-enabled devices, several large-scale datasets have been created, e.g., the Geolife GPS dataset (17,621 trajectories) and the bdd100k dataset (100,000 trajectories). This has provided enormous streaming spatiotemporal data, benefiting many real-world applications, e.g., urban planning, mapping services, and carpooling. These applications benefit from performing many types of search queries on spatial data, such as range query and join query. Despite the importance of these types of queries on streaming data, many systems do not support them. Many also fail to handle the scalability and efficiency problems when the input data is too large. This thesis proposes the first