An Integration-Oriented Ontology to Govern Evolution in Big Data Ecosystems
January 16, 2018 ยท Declared Dead ยท ๐ EDBT/ICDT Workshops
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Authors
Sergi Nadal, Oscar Romero, Alberto Abellรณ, Panos Vassiliadis, Stijn Vansummeren
arXiv ID
1801.05161
Category
cs.DB: Databases
Citations
71
Venue
EDBT/ICDT Workshops
Last Checked
2 months ago
Abstract
Big Data architectures allow to flexibly store and process heterogeneous data, from multiple sources, in their original format. The structure of those data, commonly supplied by means of REST APIs, is continuously evolving. Thus data analysts need to adapt their analytical processes after each API release. This gets more challenging when performing an integrated or historical analysis. To cope with such complexity, in this paper, we present the Big Data Integration ontology, the core construct to govern the data integration process under schema evolution by systematically annotating it with information regarding the schema of the sources. We present a query rewriting algorithm that, using the annotated ontology, converts queries posed over the ontology to queries over the sources. To cope with syntactic evolution in the sources, we present an algorithm that semi-automatically adapts the ontology upon new releases. This guarantees ontology-mediated queries to correctly retrieve data from the most recent schema version as well as correctness in historical queries. A functional and performance evaluation on real-world APIs is performed to validate our approach.
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