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首页> 外文期刊>ACM Transactions on Embedded Computing Systems >Design and Optimization of Energy-Accuracy Tradeoff Networks for Mobile Platforms via Pretrained Deep Models
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Design and Optimization of Energy-Accuracy Tradeoff Networks for Mobile Platforms via Pretrained Deep Models

机译:通过预磨料深层模型设计和优化移动平台的能量准确性权衡网络

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摘要

Many real-world edge applications including object detection, robotics, and smart health are enabled by deploying deep neural networks (DNNs) on energy-constrained mobile platforms. In this article, we propose a novel approach to trade off energy and accuracy of inference at runtime using a design space called Learning Energy Accuracy Tradeoff Networks (LEANets). The key idea behind LEANets is to design classifiers of increasing complexity using pretrained DNNs to perform input-specific adaptive inference. The accuracy and energy consumption of the adaptive inference scheme depends on a set of thresholds, one for each classifier. To determine the set of threshold vectors to achieve different energy and accuracy tradeoffs, we propose a novel multiobjective optimization approach. We can select the appropriate threshold vector at runtime based on the desired tradeoff. We perform experiments on multiple pretrained DNNs including ConvNet, VGG-16, and MobileNet using diverse image classification datasets. Our results show that we get up to a 50% gain in energy for negligible loss in accuracy, and optimized LEANets achieve significantly better energy and accuracy tradeoff when compared to a state-of-the-art method referred to as Slimmable neural networks.
机译:许多实际边缘应用程序包括对象检测,机器人和智能健康,通过在能量受限的移动平台上部署深神经网络(DNN)来实现。在本文中,我们提出了一种新颖的方法,可以使用称为学习能精度权衡网络(Leanets)的设计空间来促进运行时的能量和推理的准确性。 Leanets背后的关键思想是使用预读数DNN来执行越来越复杂的分类器来执行特定于输入特定的自适应推断。自适应推理方案的准确性和能量消耗取决于一组阈值,每个分类器一个阈值。要确定阈值向量集以实现不同的能量和精度权衡,我们提出了一种新的多目标优化方法。我们可以根据所需的权衡在运行时选择适当的阈值向量。我们使用多样化的图像分类数据集在包括Convnet,VGG-16和MobileNet的多个佩带DNN上执行实验。我们的研究结果表明,与准确性损失可忽略不计,优化的倾少在与称为可泥质神经网络的最新方法相比,优化的倾少达到了可忽略的损失,并且优化的倾少实现了明显更好的能量和准确性权衡。

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