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dc.contributor.advisorAmato, Nancy M.
dc.contributor.advisorRauchwerger, Lawrence
dc.creatorHarshvardhan
dc.date.accessioned2019-01-17T17:23:08Z
dc.date.available2020-05-01T06:24:29Z
dc.date.created2018-05
dc.date.issued2018-05-03
dc.date.submittedMay 2018
dc.identifier.urihttps://hdl.handle.net/1969.1/173407
dc.description.abstractEfficiently processing large graphs is challenging, since parallel graph algorithms suffer from poor scalability and performance due to many factors, including heavy communication and load-imbalance. Furthermore, it is difficult to express graph algorithms, as users need to understand and effectively utilize the underlying execution of the algorithm on the distributed system. The performance of graph algorithms depends not only on the characteristics of the system (such as latency, available RAM, etc.), but also on the characteristics of the input graph (small-world scalefree, mesh, long-diameter, etc.), and characteristics of the algorithm (sparse computation vs. dense communication). The best execution strategy, therefore, often heavily depends on the combination of input graph, system and algorithm. Fine-grained expression exposes maximum parallelism in the algorithm and allows the user to concentrate on a single vertex, making it easier to express parallel graph algorithms. However, this often loses information about the machine, making it difficult to extract performance and scalability from fine-grained algorithms. To address these issues, we present a model for expressing parallel graph algorithms using a fine-grained expression. Our model decouples the algorithm-writer from the underlying details of the system, graph, and execution and tuning of the algorithm. We also present various graph paradigms that optimize the execution of graph algorithms for various types of input graphs and systems. We show our model is general enough to allow graph algorithms to use the various graph paradigms for the best/fastest execution, and demonstrate good performance and scalability for various different graphs, algorithms, and systems to 100,000+ cores.en
dc.format.mimetypeapplication/pdf
dc.language.isoen
dc.subjectGraph Processingen
dc.subjectDistributed Systemsen
dc.subjectGraph Algorithmsen
dc.subjectHigh Performance Computingen
dc.subjectParallel Graph Algorithmsen
dc.subjectScalable Graph Algorithmsen
dc.subjectDistributed Graph Processing Systemsen
dc.subjectLarge-scale Graph Processingen
dc.titleAlgorithm-Level Optimizations for Scalable Parallel Graph Processingen
dc.typeThesisen
thesis.degree.departmentComputer Science and Engineeringen
thesis.degree.disciplineComputer Scienceen
thesis.degree.grantorTexas A & M Universityen
thesis.degree.nameDoctor of Philosophyen
thesis.degree.levelDoctoralen
dc.contributor.committeeMemberJiang, Andrew
dc.contributor.committeeMemberAdams, Marvin L.
dc.type.materialtexten
dc.date.updated2019-01-17T17:23:08Z
local.embargo.terms2020-05-01
local.etdauthor.orcid0000-0002-0016-7439


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