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E-ERA: An energy-efficient reconfigurable architecture for RNNs using dynamically adaptive approximate computing

机译:E-ERA:使用动态自适应近似计算的RNN高效节能可重配置架构

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This paper proposes an Energy-Efficient Reconfigurable Architecture (E-ERA) for Recurrent Neural Networks (RNNs). In E-ERA, reconfigurable computing arrays with approximate multipliers and dynamically adaptive accuracy controlling mechanism are implemented to achieve high energy efficiency. The E-ERA prototype is implemented on TSMC 45 nm process. Experimental results show that, comparing with traditional designs, the power consumption of E-ERA is reduced by 28.6%a??52.3%, with only 5.3%a??9.2% loss in accuracy. Compared with state-of-the-art architectures, E-ERA outperforms up to 1.78X in power efficiency and can achieve 304 GOPS/W when processing RNNs for speech recognition.
机译:本文提出了一种用于递归神经网络(RNN)的节能可重构体系结构(E-ERA)。在E-ERA中,实现了具有近似乘法器的可重构计算阵列和动态自适应精度控制机制,以实现高能效。 E-ERA原型是在台积电45纳米工艺上实现的。实验结果表明,与传统设计相比,E-ERA的功耗降低了28.6%a≤52.3%,而准确性仅降低了5.3%a≤9.2%。与最先进的架构相比,E-ERA的能效比高达1.78倍,在处理用于语音识别的RNN时可达到304 GOPS / W。

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