Authors
Makoto Onizuka, Hiroyuki Kato, Soichiro Hidaka, Keisuke Nakano, Zhenjiang Hu
Publication date
2013/12/1
Journal
Proceedings of the VLDB Endowment
Volume
7
Issue
4
Pages
241-252
Publisher
VLDB Endowment
Description
We propose OptIQ, a query optimization approach for iterative queries in distributed environment. OptIQ removes redundant computations among different iterations by extending the traditional techniques of view materialization and incremental view evaluation. First, OptIQ decomposes iterative queries into invariant and variant views, and materializes the former view. Redundant computations are removed by reusing the materialized view among iterations. Second, OptIQ incrementally evaluates the variant view, so that redundant computations are removed by skipping the evaluation on converged tuples in the variant view. We verify the effectiveness of OptIQ through the queries of PageRank and k-means clustering on real datasets. The results show that OptIQ achieves high efficiency, up to five times faster than is possible without removing the redundant computations among iterations.
Total citations
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Scholar articles
M Onizuka, H Kato, S Hidaka, K Nakano, Z Hu - Proceedings of the VLDB Endowment, 2013