A General Hardware and Software Co-Design Framework for Energy-Efficient Edge AI

Nitthilan Kanappan Jayakodi, J. Doppa, P. Pande
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引用次数: 1

Abstract

A huge number of edge applications including self-driving cars, mobile health, robotics, and augmented reality / virtual reality are enabled by deep neural networks (DNNs). Currently, much of this computation for these applications happens in the cloud, but there are several good reasons to perform the processing on local edge platforms such as smartphones: improved accessibility to different parts of the world, low latency, and data privacy. In this paper, we present a general hardware and software co-design framework for energy-efficient edge AI for both simple classification and structured output prediction tasks (e.g., 3D shapes from images). This framework relies on two key ideas. First, we design a space of DNNs of increasing complexity (coarse to fine) and perform input-specific adaptive inference by selecting a DNN of appropriate complexity depending on the hardness of input examples. Second, we execute the selected DNN on the target edge platform using a resource management policy to save energy. We also provide instantiations of our co-design framework for three qualitatively different problem settings: convolutional neural networks for image classification, graph convolutional networks for predicting 3D shapes from images, and generative adversarial networks on photo-realistic unconditional image generation. Our experiments on real-world benchmarks and mobile platforms show the effectiveness of our co-design framework in achieving significant gain in energy with little to no loss in accuracy of predictions.
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节能边缘人工智能的通用软硬件协同设计框架
包括自动驾驶汽车、移动医疗、机器人和增强现实/虚拟现实在内的大量边缘应用都是由深度神经网络(dnn)实现的。目前,这些应用程序的大部分计算都是在云中进行的,但有几个很好的理由可以在智能手机等本地边缘平台上执行处理:改善对世界不同地区的可访问性、低延迟和数据隐私。在本文中,我们提出了一个通用的硬件和软件协同设计框架,用于节能边缘人工智能的简单分类和结构化输出预测任务(例如,来自图像的3D形状)。这个框架依赖于两个关键思想。首先,我们设计了一个复杂度从粗到细不断增加的DNN空间,并根据输入样本的硬度选择适当复杂度的DNN来执行特定于输入的自适应推理。其次,我们使用资源管理策略在目标边缘平台上执行选定的DNN以节省能源。我们还为三个定性不同的问题设置提供了我们的协同设计框架的实例:用于图像分类的卷积神经网络,用于从图像中预测3D形状的图形卷积网络,以及用于照片真实感无条件图像生成的生成对抗网络。我们在现实世界基准和移动平台上的实验表明,我们的协同设计框架在实现能量显著增加而预测准确性几乎没有损失的情况下是有效的。
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