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Enhancing Sedona (formerly GeoSpark) with Efficient k Nearest Neighbor Join Processing

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Auteur
García-García F., Corral A., Iribarne L., Vassilakopoulos M.
Date
2021
Language
en
DOI
10.1007/978-3-030-78428-7_24
Sujet
Cluster computing
Large scale systems
Learning algorithms
Motion compensation
Text processing
Continuous monitoring
Design and implements
K nearest neighbor (KNN)
K-nearest neighbors
Location-based systems
Partitioning techniques
Spatial applications
Spatial partitioning
Nearest neighbor search
Springer Science and Business Media Deutschland GmbH
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Résumé
Sedona (formerly GeoSpark) is an in-memory cluster computing system for processing large-scale spatial data, which extends the core of Apache Spark to support spatial datatypes, partitioning techniques, indexes, and operations (e.g., spatial range, k Nearest Neighbor (kNN) and spatial join queries). k Nearest Neighbor Join Query (kNNJQ) finds for each object in one dataset P, k nearest neighbors of this object in another dataset Q. It is a common operation used in numerous spatial applications (e.g., GISs, location-based systems, continuous monitoring, etc.). kNNJQ is a time-consuming spatial operation, since it can be considered a hybrid of spatial join and nearest neighbor search. Given that Sedona outperforms other Spark-based spatial analytics systems in most cases and, it does not support kNN joins, including kNNJQ is a worthwhile challenge. Therefore, in this paper, we investigate how to design and implement an efficient kNNJQ algorithm in Sedona, using the most appropriate spatial partitioning technique and other improvements. Finally, the results of an extensive set of experiments with real-world datasets are presented, demonstrating that the proposed kNNJQ algorithm is efficient, scalable and robust in Sedona. © 2021, Springer Nature Switzerland AG.
URI
http://hdl.handle.net/11615/71958
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