Publication | Open Access
Faster Parallel Traversal of Scale Free Graphs at Extreme Scale with Vertex Delegates
71
Citations
22
References
2014
Year
Unknown Venue
Cluster ComputingEngineeringNetwork AnalysisEducationGraph DatabaseHub Processing WorkloadGraph ProcessingData ScienceStructural Graph TheoryDiscrete MathematicsParallel ComputingCombinatorial OptimizationVertex DelegatesSocial Network AnalysisAlgebraic Graph TheoryComputer EngineeringComputer ScienceExtreme ScaleGraph AlgorithmExtreme Scale GraphsNetwork ScienceGraph TheoryLarge-scale NetworkFaster Parallel TraversalParallel ProgrammingGraph AnalysisExtremal Graph TheoryBig Data
At extreme scale, irregularities in the structure of scale-free graphs such as social network graphs limit our ability to analyze these important and growing datasets. A key challenge is the presence of high-degree vertices (hubs), that leads to parallel workload and storage imbalances. The imbalances occur because existing partitioning techniques are not able to effectively partition high-degree vertices. We present techniques to distribute storage, computation, and communication of hubs for extreme scale graphs in distributed memory supercomputers. To balance the hub processing workload, we distribute hub data structures and related computation among a set of delegates. The delegates coordinate using highly optimized, yet portable, asynchronous broadcast and reduction operations. We demonstrate scalability of our new algorithmic technique using Breadth-First Search (BFS), Single Source Shortest Path (SSSP), K-Core Decomposition, and Page-Rank on synthetically generated scale-free graphs. Our results show excellent scalability on large scale-free graphs up to 131K cores of the IBM BG/P, and outperform the best known Graph500 performance on BG/P Intrepid by 15%.
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