cgmOLAP: Efficient Parallel Generation and Querying of Terabyte Size ROLAP Data Cubes
Author(s)
Chen, Y
Rau-Chaplin, A
Dehne, F
Eavis, T
Green, D
Sithirasenan, E
Griffith University Author(s)
Year published
2006
Metadata
Show full item recordAbstract
We present the cgmOLAP server, the first fully functional parallel OLAP system able to build data cubes at a rate of more than 1 Terabyte per hour. cgmOLAP incorporates a variety of novel approaches for the parallel computation of full cubes, partial cubes, and iceberg cubes as well as new parallel cube indexing schemes. The cgmOLAP system consists of an application interface, a parallel query engine, a parallel cube materialization engine, meta data and cost model repositories, and shared server components that provide uniform management of I/O, memory, communications, and disk resources.We present the cgmOLAP server, the first fully functional parallel OLAP system able to build data cubes at a rate of more than 1 Terabyte per hour. cgmOLAP incorporates a variety of novel approaches for the parallel computation of full cubes, partial cubes, and iceberg cubes as well as new parallel cube indexing schemes. The cgmOLAP system consists of an application interface, a parallel query engine, a parallel cube materialization engine, meta data and cost model repositories, and shared server components that provide uniform management of I/O, memory, communications, and disk resources.
View less >
View less >
Conference Title
Proceedings - International Conference on Data Engineering
Volume
2006
Publisher URI
Subject
Multi-Disciplinary