Title :
Towards hybrid online on-demand querying of realtime data with stateful complex event processing
Author :
Qunzhi Zhou ; Simmhan, Yogesh ; Prasanna, Viktor
Author_Institution :
Dept. of Comput. Sci., Univ. of Southern California, Los Angeles, CA, USA
Abstract :
Emerging Big Data applications in areas like ecommerce and energy industry require both online and on-demand queries to be performed over vast and fast data arriving as streams. These present novel challenges to Big Data management systems. Complex Event Processing (CEP) is recognized as a high performance online query scheme which in particular deals with the velocity aspect of the 3-V´s of Big Data. However, traditional CEP systems do not consider data variety and lack the capability to embed ad hoc queries over the volume of data streams. In this paper, we propose H2O, a stateful complex event processing framework, to support hybrid online and on-demand queries over realtime data. We propose a semantically enriched event and query model to address data variety. A formal query algebra is developed to precisely capture the stateful and containment semantics of online and on-demand queries. We describe techniques to achieve the interactive query processing over realtime data featured by efficient online querying, dynamic stream data persistence and on-demand access. The system architecture is presented and the current implementation status reported.
Keywords :
data handling; process algebra; query processing; CEP; H2O; big data management systems; complex event processing; containment semantics; data streams; e-commerce; emerging big data applications; energy industry; formal query algebra; hybrid online on-demand querying; hybrid online queries; query model; realtime data; semantically enriched event; stateful complex event processing; stateful semantics; Algebra; Data handling; Data models; Data storage systems; Information management; Query processing; Semantics; big data; complex event processing; inmemory database; semantic web; stream processing;
Conference_Titel :
Big Data, 2013 IEEE International Conference on
Conference_Location :
Silicon Valley, CA
DOI :
10.1109/BigData.2013.6691575