E-QUARTIC: Energy Efficient Edge Ensemble of Convolutional Neural Networks for Resource-Optimized Learning

Le Zhang, Onat Gungor, Flavio Ponzina, Tajana Rosing
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Abstract

Ensemble learning is a meta-learning approach that combines the predictions of multiple learners, demonstrating improved accuracy and robustness. Nevertheless, ensembling models like Convolutional Neural Networks (CNNs) result in high memory and computing overhead, preventing their deployment in embedded systems. These devices are usually equipped with small batteries that provide power supply and might include energy-harvesting modules that extract energy from the environment. In this work, we propose E-QUARTIC, a novel Energy Efficient Edge Ensembling framework to build ensembles of CNNs targeting Artificial Intelligence (AI)-based embedded systems. Our design outperforms single-instance CNN baselines and state-of-the-art edge AI solutions, improving accuracy and adapting to varying energy conditions while maintaining similar memory requirements. Then, we leverage the multi-CNN structure of the designed ensemble to implement an energy-aware model selection policy in energy-harvesting AI systems. We show that our solution outperforms the state-of-the-art by reducing system failure rate by up to 40% while ensuring higher average output qualities. Ultimately, we show that the proposed design enables concurrent on-device training and high-quality inference execution at the edge, limiting the performance and energy overheads to less than 0.04%.
E-QUARTIC:用于资源优化学习的高能效边缘卷积神经网络集合
然而,像卷积神经网络(CNNs)这样的集合模型会带来高内存和计算开销,从而阻碍其在嵌入式系统中的部署。这些设备通常配备小型电池提供电源,还可能包括从环境中提取能量的能量收集模块。在这项工作中,我们提出了 E-QUARTIC,这是一种新颖的高能效边缘集合框架,用于构建以人工智能(AI)为基础的嵌入式系统为目标的 CNN 集合。我们的设计优于单实例 CNN 基线和最先进的边缘 AI 解决方案,在保持类似内存要求的同时,提高了准确性并适应了不同的能源条件。然后,我们利用所设计的集合的多 CNN 结构,在能量收集人工智能系统中实现了能量感知模型选择策略。我们的研究表明,我们的解决方案优于最先进的解决方案,系统故障率降低了 40%,同时确保了更高的平均输出质量。最终,我们证明了所提出的设计能够在边缘同时进行设备上训练和高质量推理执行,将性能和能耗开销限制在 0.04% 以下。
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