精细精度约束下的自动节能DNN压缩

Ourania Spantidi, Iraklis Anagnostopoulos
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引用次数: 0

摘要

深度神经网络(dnn)应用于各种领域,其计算强度对功耗预算有限的嵌入式设备造成压力。深度神经网络压缩已被用于在嵌入式设备上以精度损失为代价实现能量消耗的收益。压缩引起的精度下降是通过微调或再训练来解决的,这并不总是可行的。此外,最先进的方法压缩dnn在推理过程中达到的平均精度,这可能是一个误导性的评估指标。在这项工作中,我们探索了DNN推理精度的更细粒度特性,并通过修剪和量化联合使用信号时间逻辑和证伪来生成节能的DNN。我们提供了在运行时控制DNN推理质量的能力,并提出了一个自动化框架,可以生成压缩DNN,满足严格的细粒度精度要求。在ImageNet数据集上进行的评估显示,与基线深度神经网络相比,能耗增加了30%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Energy-Efficient DNN Compression under Fine-Grain Accuracy Constraints
Deep Neural Networks (DNNs) are utilized in a variety of domains, and their computation intensity is stressing embedded devices that comprise limited power budgets. DNN compression has been employed to achieve gains in energy consumption on embedded devices at the cost of accuracy loss. Compression-induced accuracy degradation is addressed through fine-tuning or retraining, which can not always be feasible. Additionally, state-of-art approaches compress DNNs with respect to the average accuracy achieved during inference, which can be a misleading evaluation metric. In this work, we explore more fine-grain properties of DNN inference accuracy, and generate energy-efficient DNNs using signal temporal logic and falsification jointly through pruning and quantization. We offer the ability to control at run-time the quality of the DNN inference, and propose an automated framework that can generate compressed DNNs that satisfy tight fine-grain accuracy requirements. The conducted evaluation on the ImageNet dataset has shown over 30% in energy consumption gains when compared to baseline DNNs.
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