Queen Jane Approximately: Enabling Efficient Neural Network Inference with Context-Adaptivity

O. Machidon, Davor Sluga, V. Pejović
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引用次数: 1

Abstract

Recent advances in deep learning allow on-demand reduction of model complexity, without a need for re-training, thus enabling a dynamic trade-off between the inference accuracy and the energy savings. Approximate mobile computing, on the other hand, adapts the computation approximation level as the context of usage, and consequently the computation needs or result accuracy needs, vary. In this work, we propose a synergy between the two directions and develop a context-aware method for dynamically adjusting the width of an on-device neural network based on the input and context-dependent classification confidence. We implement our method on a human activity recognition neural network and through measurements on a real-world embedded device demonstrate that such a network would save up to 37.8% energy and induce only 1% loss of accuracy, if used for continuous activity monitoring in the field of elderly care.
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简女王近似:实现具有上下文适应性的高效神经网络推理
深度学习的最新进展允许按需降低模型复杂性,而不需要重新训练,从而在推理精度和节能之间实现动态权衡。另一方面,近似移动计算根据使用上下文调整计算近似水平,因此计算需求或结果精度需求是不同的。在这项工作中,我们提出了两个方向之间的协同作用,并开发了一种基于输入和上下文相关分类置信度动态调整设备上神经网络宽度的上下文感知方法。我们在人类活动识别神经网络上实现了我们的方法,并通过对现实世界嵌入式设备的测量表明,如果用于老年人护理领域的连续活动监测,这种网络将节省高达37.8%的能量,并且只会导致1%的准确性损失。
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