2012-11-11
Robust runtime optimization and skew-resistant execution of analytical SPARQL queries on Pig
Publication
Publication
We describe a system that incrementally translates SPARQL queries to Pig Latin and executes them on a Hadoop cluster. This system is designed to work eciently on complex queries with many self-joins over huge datasets, avoiding job failures even in the case of joins with unexpected high-value skew. To be robust against cost estimation errors, our system interleaves query optimization with query execution, determining the next steps to take based on data samples and statistics gathered during the previous step. Furthermore, we have developed a novel skew-resistant join algorithm that replicates tuples corresponding to popular keys. We evaluate the eectiveness of our approach both on a synthetic benchmark known to generate complex queries (BSBM-BI) as well as on a Yahoo! case of data analysis using RDF data crawled from the web. Our results indicate that our system is indeed capable of processing huge datasets without precomputed statistics while exhibiting good load-balancing properties.
Additional Metadata | |
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Springer | |
IBM Research, Dublin, Ireland , Yahoo! Research, Barcelona, Spain | |
doi.org/10.1007/978-3-642-35176-1_16 | |
Lecture Notes in Computer Science | |
International Semantic Web Conference | |
Organisation | Database Architectures |
Kotoulas, S., Urbani, J., Boncz, P., & Mika, P. (2012). Robust runtime optimization and skew-resistant execution of analytical SPARQL queries on Pig. In International Semantic Web Conference (pp. 247–262). Springer. doi:10.1007/978-3-642-35176-1_16 |