具有早期退出预测的资源约束边缘AI

Rongkang Dong, Yuyi Mao, Jinchao Zhang
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引用次数: 5

摘要

通过利用数据样本多样性,早期退出网络最近成为一种突出的神经网络架构,以加速深度学习推理过程。然而,早期出口的中间分类器引入了额外的计算开销,这对资源受限的边缘人工智能(AI)是不利的。在本文中,我们提出了一种早期退出预测机制,以减少早期退出网络支持的设备边缘协同推理系统的设备上计算开销。具体来说,我们设计了一个低复杂度的模块,即退出预测器,来指导一些明显“硬”的样本绕过早期退出的计算。此外,考虑到通信带宽的变化,我们扩展了延迟感知边缘推断的提前退出预测机制,该机制通过几个简单的回归模型来适应提前退出预测器的预测阈值和提前退出网络的置信度阈值。大量的实验结果证明了退出预测器在实现早退出网络的精度和设备上计算开销之间更好的权衡方面的有效性。此外,与基线方法相比,所提出的延迟感知边缘推理方法在不同带宽条件下都具有更高的推理精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Resource-Constrained Edge AI with Early Exit Prediction
By leveraging the data sample diversity, the early-exit network recently emerges as a prominent neural network architecture to accelerate the deep learning inference process. However, intermediate classifiers of the early exits introduce additional computation overhead, which is unfavorable for resource-constrained edge artificial intelligence (AI). In this paper, we propose an early exit prediction mechanism to reduce the on-device computation overhead in a device-edge co-inference system supported by early-exit networks. Specifically, we design a low-complexity module, namely the Exit Predictor, to guide some distinctly"hard"samples to bypass the computation of the early exits. Besides, considering the varying communication bandwidth, we extend the early exit prediction mechanism for latency-aware edge inference, which adapts the prediction thresholds of the Exit Predictor and the confidence thresholds of the early-exit network via a few simple regression models. Extensive experiment results demonstrate the effectiveness of the Exit Predictor in achieving a better tradeoff between accuracy and on-device computation overhead for early-exit networks. Besides, compared with the baseline methods, the proposed method for latency-aware edge inference attains higher inference accuracy under different bandwidth conditions.
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