Publication | Closed Access
Large-scale graph analytics in Aster 6
29
Citations
17
References
2014
Year
Cluster ComputingEngineeringNetwork AnalysisGraph DatabaseMap-reduceGraph EngineGraph ProcessingAster 6Data ScienceData IntegrationParallel ComputingData ManagementGraph AnalyticsHigh-performance Data AnalyticsSpecialized Graph EngineKnowledge DiscoveryComputer ScienceData-intensive ComputingGraph TheoryBusinessParallel ProgrammingGraph AnalysisMassive Data ProcessingBig Data
Graph analytics is an important big data discovery technique. Applications include identifying influential employees for retention, detecting fraud in a complex interaction network, and determining product affinities by exploiting community buying patterns. Specialized platforms have emerged to satisfy the unique processing requirements of large-scale graph analytics; however, these platforms do not enable graph analytics to be combined with other analytics techniques, nor do they work well with the vast ecosystem of SQL-based business applications. Teradata Aster 6.0 adds support for large-scale graph analytics to its repertoire of analytics capabilities. The solution extends the multi-engine processing architecture with support for bulk synchronous parallel execution, and a specialized graph engine that enables iterative analysis of graph structures. Graph analytics functions written to the vertex-oriented API exposed by the graph engine can be invoked from the context of an SQL query and composed with existing SQL-MR functions, thereby enabling data scientists and business applications to express computations that combine large-scale graph analytics with techniques better suited to a different style of processing. The solution includes a suite of pre-built graph analytic functions adapted for parallel execution.
| Year | Citations | |
|---|---|---|
Page 1
Page 1