2021
DOI: 10.48550/arxiv.2106.10499
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Evaluating Spatial Accelerator Architectures with Tiled Matrix-Matrix Multiplication

Abstract: There is a growing interest in custom spatial accelerators for machine learning applications. These accelerators employ a spatial array of processing elements (PEs) interacting via custom buffer hierarchies and networks-on-chip. The efficiency of these accelerators comes from employing optimized dataflow (i.e., spatial/temporal partitioning of data across the PEs and fine-grained scheduling) strategies to optimize data reuse. The focus of this work is to evaluate these accelerator architectures using a tiled g… Show more

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