2019
DOI: 10.48550/arxiv.1910.06310
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A High-Throughput Solver for Marginalized Graph Kernels on GPU

Yu-Hang Tang,
Oguz Selvitopi,
Doru Popovici
et al.

Abstract: We present the design and optimization of a solver for efficient and high-throughput computation of the marginalized graph kernel on General Purpose GPUs. The graph kernel is computed using the conjugate gradient method to solve a generalized Laplacian of the tensor product between a pair of graphs. To cope with the large gap between the instruction throughput and the memory bandwidth of the GPUs, our solver forms the graph tensor product on-the-fly without storing it in memory. This is achieved by using threa… Show more

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