A High Efficiency Accelerator for Deep Neural Networks

Aliasger Zaidy, Andre Xian Ming Chang, Vinayak Gokhale, E. Culurciello
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Abstract

Deep Neural Networks (DNNs) are the current state of the art for various tasks such as object detection, natural language processing and semantic segmentation. These networks are massively parallel, hierarchical models with each level of hierarchy performing millions of operations on a single input. The enormous amount of parallel computation makes these DNNs suitable for custom acceleration. Custom accelerators can provide real time inference of DNNs at low power thus enabling widespread embedded deployment. In this paper, we present Snowflake, a high efficiency, low power accelerator for DNNs. Snowflake was designed to achieve optimum occupancy at low bandwidths and it is agnostic to the network architecture. Snowflake was implemented on the Xilinx Zynq XC7Z045 APSoC and achieves a peak performance of 128 G-ops/s. Snowflake is able to maintain a throughput of 98 FPS on AlexNet while averaging 1.2 GB/s of memory bandwidth.
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一种高效的深度神经网络加速器
深度神经网络(dnn)是目前各种任务的最新技术,如对象检测,自然语言处理和语义分割。这些网络是大规模并行的分层模型,每一层对单个输入执行数百万个操作。大量的并行计算使得这些深度神经网络适合自定义加速。定制加速器可以在低功耗下提供dnn的实时推理,从而实现广泛的嵌入式部署。在本文中,我们提出了Snowflake,一个高效,低功耗的深度神经网络加速器。Snowflake的设计目的是在低带宽下实现最佳占用,并且与网络架构无关。Snowflake在Xilinx Zynq XC7Z045 APSoC上实现,峰值性能达到128 G-ops/s。雪花能够在AlexNet上保持98 FPS的吞吐量,同时平均1.2 GB/s的内存带宽。
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