Towards Analytics Aware Ontology Based Access to Static and Streaming Data (Extended Version)
July 18, 2016 Β· Declared Dead Β· π International Workshop on the Semantic Web
"No code URL or promise found in abstract"
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Authors
Evgeny Kharlamov, Yannis Kotidis, Theofilos Mailis, Christian Neuenstadt, Charalampos Nikolaou, ΓzgΓΌr Γzcep, Christoforos Svingos, Dmitriy Zheleznyakov, Sebastian Brandt, Ian Horrocks, Yannis Ioannidis, Steffen Lamparter, Ralf MΓΆller
arXiv ID
1607.05351
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.DB
Citations
40
Venue
International Workshop on the Semantic Web
Last Checked
4 months ago
Abstract
Real-time analytics that requires integration and aggregation of heterogeneous and distributed streaming and static data is a typical task in many industrial scenarios such as diagnostics of turbines in Siemens. OBDA approach has a great potential to facilitate such tasks; however, it has a number of limitations in dealing with analytics that restrict its use in important industrial applications. Based on our experience with Siemens, we argue that in order to overcome those limitations OBDA should be extended and become analytics, source, and cost aware. In this work we propose such an extension. In particular, we propose an ontology, mapping, and query language for OBDA, where aggregate and other analytical functions are first class citizens. Moreover, we develop query optimisation techniques that allow to efficiently process analytical tasks over static and streaming data. We implement our approach in a system and evaluate our system with Siemens turbine data.
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