Running Map Inference On Million Node Graphical Models: A High Performance Computing Perspective

CCGRID '15: Proceedings of the 15th IEEE/ACM International Symposium on Cluster, Cloud, and Grid Computing(2015)

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摘要
An important problem in discrete graphical models is the maximum a posteriori (MAP) inference problem. Recent research has been focusing on the development of parallel MAP inference algorithm, which scales to graphical models of millions of nodes. In this paper, we introduce a parallel implementation of the recently proposed Bethe-ADMM algorithm using Message Passing Interface (MPI), which allows us to fully utilize the computing power provided by the modern supercomputers with thousands of cores. Experimental results demonstrate that for a broad class of problems, our parallel implementation of Bethe-ADMM scales almost linearly even with thousands of cores.
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关键词
Alternating Direction Method of Multipliers,Markov Random Field,Maximum a Posteriori Inference,Message Passing Interface
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