PreAxC: Error Distribution Prediction for Approximate Computing Quality Control using Graph Neural Networks

Lakshmi Sathidevi, Abhinav Sharma, Nan Wu, Xun Jiao, Cong Hao
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Abstract

While Approximate Computing (AxC) is a promising technique to trade off accuracy for energy efficiency, one fundamental challenge is the lack of accurate and informative error models of AxC applications. In this work, we propose PreAxC, a novel error modeling and prediction flow for AxC designs. Instead of using simple error statistics as in existing work, we use error distribution for AxC circuit error analysis with input awareness. We propose graph neural network (GNN) based methods to predict the error distribution of AxC programs, which are represented as data flow graphs (DFGs). We propose two approaches: model-free and model-based, where the former directly predicts the error distribution histogram, and the latter models the distribution using Gaussian Mixture Model (GMM) and predicts the GMM parameters. Experiment results demonstrate that our approaches can outperform existing error statistics and can successfully predict the error distribution, especially the model-free approach, even for completely unseen graphs (representing new AxC programs) during training.
基于图神经网络的近似计算质量控制误差分布预测
虽然近似计算(AxC)是一种很有前途的技术,可以在准确性和能源效率之间进行权衡,但一个基本的挑战是AxC应用程序缺乏准确和信息丰富的误差模型。在这项工作中,我们提出了一种新的误差建模和预测流程PreAxC。本文采用误差分布的方法来分析具有输入感知的AxC电路误差,而不是像现有的工作那样使用简单的误差统计。我们提出了基于图神经网络(GNN)的方法来预测AxC程序的误差分布,并将其表示为数据流图(DFGs)。我们提出了两种方法:无模型和基于模型,前者直接预测误差分布直方图,后者使用高斯混合模型(GMM)建模分布并预测GMM参数。实验结果表明,我们的方法可以优于现有的误差统计,并且可以成功地预测误差分布,特别是无模型方法,即使是在训练过程中完全看不见的图(代表新的AxC程序)。
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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