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Error resilience analysis for systematically employing approximate computing in convolutional neural networks

机译:卷积神经网络中系统地采用近似计算的误差弹性分析

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Approximate computing is an emerging paradigm for error resilient applications as it leverages accuracy loss for improving power, energy, area, and/or performance of an application. The spectrum of error resilient applications includes the domains of Image and video processing, Artificial Intelligence (AI) and Machine Learning (ML), data analytics, and other Recognition, Mining, and Synthesis (RMS) applications. In this work, we address one of the most challenging question, i.e., how to systematically employ approximate computing in Convolution Neural Networks (CNNs), which are one of the most compute-intensive and the pivotal part of AI. Towards this, we propose a methodology to systematically analyze error resilience of deep CNNs and identify parameters that can be exploited for improving performance/efficiency of these networks for inference purposes. We also present a case study for significance-driven classification of filters for different convolutional layers, and propose to prune those having the least significance, and thereby enabling accuracy vs. efficiency tradeoffs by exploiting their resilience characteristics in a systematic way.
机译:近似计算是错误弹性应用的新兴范式,因为它利用精度损耗来提高应用程序的功率,能量,区域和/或性能。误差弹性应用程序包括图像和视频处理的域,人工智能(AI)和机器学习(ML),数据分析和其他识别,挖掘和合成(RMS)应用。在这项工作中,我们解决了最具挑战性的问题之一,即如何系统地使用卷积神经网络(CNNS)中的近似计算,这是AI最具计算密集型和关键部分之一。为此,我们提出了一种方法来系统地分析深度CNN的误差弹性,并识别可以利用以提高这些网络的性能/效率以推动目的的参数。我们还提出了一种案例研究,用于不同卷积层的过滤器的显着驱动分类,并建议通过利用系统方式利用它们的恢复特性来修剪具有最小重要性的人,从而实现准确性衡量。

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