2021
DOI: 10.48550/arxiv.2111.07684
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AutoGMap: Learning to Map Large-scale Sparse Graphs on Memristive Crossbars

Abstract: The sparse representation of graphs has shown its great potential for accelerating the computation of the graph applications (e.g. Social Networks, Knowledge Graphs) on traditional computing architectures (CPU, GPU, or TPU). But the exploration of the large-scale sparse graph computing on processing-in-memory (PIM) platforms (typically with memristive crossbars) is still in its infancy. As we look to implement the computation or storage of large-scale or batch graphs on memristive crossbars, a natural assumpti… Show more

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