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POLAR: A Pipelined/Overlapped FPGA-Based LSTM Accelerator

机译:POLAR:基于管道的/重叠的基于FPGA的LSTM加速器

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摘要

In this brief, a low resource utilization field-programmable gate array (FPGA)-based long short-term memory (LSTM) network architecture for accelerating the inference phase is presented. The architecture has low-power and high-speed features that are achieved through overlapping the timing of the operations and pipelining the datapath. Moreover, this architecture requires negligible internal memory size for storing the intermediate data leading to low resource utilization and simple routing, which provides lower interconnect delay (higher operating frequency). A designer may adjust the resource utilization (as well as the latency) of the proposed architecture readily at the registertransfer level (RTL) design by adjusting the amount of parallelization. This makes the process of mapping the architecture onto different types of FPGAs, subject to defined constraints, a simple one. The efficacy of the proposed architecture is assessed by implementing an LSTM network on different types of FPGAs. Compared with the recent works, the proposed architecture provides up to about 1.6x, 43.6x, 21.9x, and 114.5x improvements in frequency, power efficiency, GOP/s, and GOP/s/W, respectively. Finally, our proposed architecture operates at 17.64 GOP/s, which is 2.31x faster than the best previously reported results.
机译:在此简介中,提出了一种用于加速推理阶段的基于低资源利用率的现场可编程门阵列(FPGA)的长短期存储器(LSTM)网络体系结构。该架构具有低功耗和高速功能,这可以通过重叠操作时序和流水化数据路径来实现。而且,该架构要求用于存储中间数据的内部存储器大小可忽略不计,从而导致资源利用率低和路由简单,从而提供了较低的互连延迟(较高的工作频率)。设计人员可以通过调整并行化量,轻松地在寄存器传输级别(RTL)设计中调整建议体系结构的资源利用率(以及延迟)。这使得将架构映射到不同类型的FPGA(取决于定义的约束)的过程非常简单。通过在不同类型的FPGA上实现LSTM网络,可以评估所提出体系结构的有效性。与最近的工作相比,拟议的体系结构分别在频率,功率效率,GOP / s和GOP / s / W方面分别提高了约1.6倍,43.6倍,21.9倍和114.5倍。最后,我们提出的架构以17.64 GOP / s的速度运行,比以前报告的最佳结果快2.31倍。

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