Abstract
The ubiquity of location-aware devices, e.g., smartphones and GPS devices, has led to a plethora of location-based services in which huge amounts of geotagged information need to be efficiently processed by large-scale computing clusters. This demo presents AQWA, an adaptive and query-workload-aware data partitioning mechanism for processing large-scale spatial data. Unlike existing cluster-based systems, e.g., SpatialHadoop, that apply static partitioning of spatial data, AQWA has the ability to react to changes in the query-workload and data distribution. A key feature of AQWA is that it does not assume prior knowledge of the query-workload or data distribution. Instead, AQWA reacts to changes in both the data and the query-workload by incrementally updating the partitioning of the data. We demonstrate two prototypes of AQWA deployed over Hadoop and Spark. In both prototypes, we process spatial range and k-nearest-neighbor (kNN, for short) queries over largescale spatial datasets, and we exploit the performance of AQWA under different query-workloads.
Original language | English |
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Title of host publication | Proceedings of the VLDB Endowment |
Editors | Ki-Joune Li, Simonas Saltenis, Christophe Claramunt |
Publisher | Association for Computing Machinery |
Pages | 1968-1971 |
Number of pages | 4 |
Volume | 8 |
Edition | 12 12 |
DOIs | |
Publication status | Published - 2015 |
Event | 3rd Workshop on Spatio-Temporal Database Management, STDBM 2006, Co-located with the 32nd International Conference on Very Large Data Bases, VLDB 2006 - Seoul, Korea, Republic of Duration: 11 Sept 2006 → 11 Sept 2006 |
Conference
Conference | 3rd Workshop on Spatio-Temporal Database Management, STDBM 2006, Co-located with the 32nd International Conference on Very Large Data Bases, VLDB 2006 |
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Country/Territory | Korea, Republic of |
City | Seoul |
Period | 11/09/06 → 11/09/06 |