NVIDIA边缘板上神经网络的能量消耗:一个经验模型

Seyyidahmed Lahmer, A. Khoshsirat, M. Rossi, A. Zanella
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引用次数: 6

摘要

最近,有一种趋势是将深度学习推理任务的执行转移到网络边缘,更靠近用户,以减少延迟并保护数据隐私。与此同时,人们对机器学习的能量可持续性越来越感兴趣。在这些趋势的交叉点上,本文重点关注边缘机器学习的能量表征,这引起了越来越多的关注。不幸的是,在推理过程中计算给定神经网络的能量消耗由于可能的底层硬件实现的异质性而变得复杂。在这项工作中,我们的目标是通过推导简单但准确的模型来分析一些现代边缘节点的推理任务的能量消耗。为此,我们在NVIDIA的两个知名边缘板Jetson TX2和Xavier上进行了大量的实验,收集了全连接层和卷积层的能耗。从这些实验测量中,我们提取了一个简单实用的模型,可以提供对这些边缘计算机上某个推理任务的能耗的估计。我们相信这个模型可以在许多情况下证明是有用的,例如,指导搜索高效的神经网络架构,作为神经网络修剪的启发式,在分裂计算环境中找到节能的卸载策略,或者评估和比较深度神经网络架构的能量性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Energy Consumption of Neural Networks on NVIDIA Edge Boards: an Empirical Model
Recently, there has been a trend of shifting the execution of deep learning inference tasks toward the edge of the network, closer to the user, to reduce latency and preserve data privacy. At the same time, growing interest is being devoted to the energetic sustainability of machine learning. At the intersection of these trends, in this paper we focus on the energetic characterization of machine learning at the edge, which is attracting increasing attention. Unfortunately, calculating the energy consumption of a given neural network during inference is complicated by the heterogeneity of the possible underlying hardware implementation. In this work, we aim at profiling the energetic consumption of inference tasks for some modern edge nodes by deriving simple but accurate models. To this end, we performed a large number of experiments to collect the energy consumption of fully connected and convolutional layers on two well-known edge boards by NVIDIA, namely, Jetson TX2 and Xavier. From these experimental measurements, we have then distilled a simple and practical model that can provide an estimate of the energy consumption of a certain inference task on these edge computers. We believe that this model can prove useful in many contexts as, for instance, to guide the search for efficient neural network architectures, as a heuristic in neural network pruning, to find energy-efficient offloading strategies in a split computing context, or to evaluate and compare the energy performance of deep neural network architectures.
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