deep - powerx:一个基于深度学习的框架,用于低功耗近似逻辑合成

G. Pasandi, Mackenzie Peterson, Moisés Herrera, Shahin Nazarian, M. Pedram
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引用次数: 7

摘要

本文旨在将深度学习、近似计算和低功耗设计这三种强大的技术整合到一个策略中,以优化综合级的逻辑。我们利用深度学习的进步来指导近似逻辑合成引擎,以最大限度地减少给定数字CMOS电路的动态功耗,并在主输出处设定预定错误率。我们的框架Deep- powerx1专注于替换或移除技术映射网络上的门,并使用深度神经网络(DNN)来预测当网络列表的特定部分被近似时电路主要输出的错误率。Deep-PowerX的主要目标是降低动态功率,而减少面积则是次要目标。使用上述DNN, Deep-PowerX能够将标准近似逻辑合成的指数时间复杂度降低到线性时间。实验在许多开源基准电路上完成。结果表明,与精确解决方案相比,功耗和面积分别降低了1.47倍和1.43倍,与最先进的近似逻辑合成工具相比,功耗和面积分别降低了22%和27%,同时运行时间降低了几个数量级。
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Deep-PowerX: a deep learning-based framework for low-power approximate logic synthesis
This paper aims at integrating three powerful techniques namely Deep Learning, Approximate Computing, and Low Power Design into a strategy to optimize logic at the synthesis level. We utilize advances in deep learning to guide an approximate logic synthesis engine to minimize the dynamic power consumption of a given digital CMOS circuit, subject to a predetermined error rate at the primary outputs. Our framework, Deep-PowerX1, focuses on replacing or removing gates on a technology-mapped network and uses a Deep Neural Network (DNN) to predict error rates at primary outputs of the circuit when a specific part of the netlist is approximated. The primary goal of Deep-PowerX is to reduce the dynamic power whereas area reduction serves as a secondary objective. Using the said DNN, Deep-PowerX is able to reduce the exponential time complexity of standard approximate logic synthesis to linear time. Experiments are done on numerous open source benchmark circuits. Results show significant reduction in power and area by up to 1.47× and 1.43× compared to exact solutions and by up to 22% and 27% compared to state-of-the-art approximate logic synthesis tools while having orders of magnitudes lower run-time.
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