2021
DOI: 10.48550/arxiv.2104.06357
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GPU Semiring Primitives for Sparse Neighborhood Methods

Abstract: High-performance primitives for mathematical operations on sparse vectors must deal with the challenges of skewed degree distributions and limits on memory consumption that are typically not issues in dense operations. We demonstrate that a sparse semiring primitive can be flexible enough to support a wide range of critical distance measures while maintaining performance and memory efficiency on the GPU. We further show that this primitive is a foundational component for enabling many neighborhood-based inform… Show more

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