2019
DOI: 10.48550/arxiv.1907.06768
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Partitioning Graphs for the Cloud using Reinforcement Learning

Mohammad Hasanzadeh Mofrad,
Rami Melhem,
Mohammad Hammoud

Abstract: In this paper, we propose Revolver, a parallel graph partitioning algorithm capable of partitioning large-scale graphs on a single shared-memory machine. Revolver employs an asynchronous processing framework, which leverages reinforcement learning and label propagation to adaptively partition a graph. In addition, it adopts a vertex-centric view of the graph where each vertex is assigned an autonomous agent responsible for selecting a suitable partition for it, distributing thereby the computation across all v… Show more

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