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An energy-efficient coarse grained spatial architecture for convolutional neural networks AlexNet
[摘要] In this paper, we propose a CGSA (Coarse Grained Spatial Architecture) which processes different kinds of convolution with high performance and low energy consumption. The architecture’s 16 coarse grained parallel processing units achieve a peak 152 GOPS running at 500 MHz by exploiting local data reuse of image data, feature map data and filter weights. It achieves 99 frames/s on the convolutional layers of the AlexNet benchmark, consuming 264 mW working at 500 MHz and 1 V. We evaluated the architecture by comparing some recent CNN’s accelerators. The evaluation result shows that the proposed architecture achieves 3× energy efficiency and 3.5× area efficiency than existing work of the similar architecture and technology proposed by Chen.
[发布日期]  [发布机构] 
[效力级别]  [学科分类] 电子、光学、磁材料
[关键词] convolutional neural network;accelerator;AlexNet [时效性] 
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