FTDL: A Tailored FPGA-Overlay for Deep Learning with High Scalability

Runbin Shi, Yuhao Ding, Xuechao Wei, He Li, Hang Liu, Hayden Kwok-Hay So, Caiwen Ding
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引用次数: 9

Abstract

Fast inference is of paramount value to a wide range of deep learning applications. This work presents FTDL, a highly-scalable FPGA overlay framework for deep learning applications, to address the architecture and hardware mismatch faced by traditional efforts. The FTDL overlay is specifically optimized for the tiled structure of FPGAs, thereby achieving post-place-and-route operating frequencies exceeding 88 % of the theoretical maximum across different devices and design scales. A flexible compilation framework efficiently schedules matrix multiply and convolution operations of large neural network inference on the overlay and achieved over 80 % hardware efficiency on average. Taking advantage of both high operating frequency and hardware efficiency, FTDL achieves 402.6 and 151.2 FPS with GoogLeNet and ResNet50 on ImageNet, respectively, while operating at a power efficiency of 27.6 GOPS/W, making it up to 7.7 × higher performance and 1.9× more power-efficient than the state-of-the-art.
FTDL:一种适合深度学习的高扩展性fpga覆盖
快速推理对于广泛的深度学习应用具有至关重要的价值。这项工作提出了FTDL,一个高度可扩展的FPGA覆盖框架,用于深度学习应用,以解决传统工作所面临的架构和硬件不匹配问题。FTDL覆盖层专门针对fpga的平铺结构进行了优化,从而实现了在不同器件和设计规模下,放置和路由后的工作频率超过理论最大值的88%。灵活的编译框架有效地调度了覆盖层上大型神经网络推理的矩阵乘法和卷积运算,平均硬件效率达到80%以上。利用高工作频率和硬件效率,FTDL在GoogLeNet和ImageNet上的ResNet50分别达到402.6和151.2 FPS,同时以27.6 GOPS/W的功率效率工作,使其性能提高7.7倍,能效提高1.9倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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