Conference Proceedings

DITA: Distributed in-memory trajectory analytics

Z Shang, G Li, Z Bao

Proceedings of the ACM SIGMOD International Conference on Management of Data | Published : 2018

Abstract

Trajectory analytics can benefit many real-world applications, e.g., frequent trajectory based navigation systems, road planning, car pooling, and transportation optimizations. Existing algorithms focus on optimizing this problem in a single machine. However, the amount of trajectories exceeds the storage and processing capability of a single machine, and it calls for large-scale trajectory analytics in distributed environments. The distributed trajectory analytics faces challenges of data locality aware partitioning, load balance, easy-to-use interface, and versatility to support various trajectory similarity functions. To address these challenges, we propose a distributed in-memory traject..

View full abstract

University of Melbourne Researchers

Grants

Awarded by 973 Program of China


Awarded by NSF of China


Awarded by ARC


Funding Acknowledgements

Guoliang Li was supported by the 973 Program of China (2015CB358700), NSF of China (61632016,61472198, 61521002,61661166012), and TAL education. Zhifeng Bao was supported by ARC (DP170102726, DP180102050), NSF of China (61728204, 91646204), and Google Faculty Award.