量化(信号处理)
推论
计算机科学
浮点型
人工神经网络
整数(计算机科学)
延迟(音频)
计算机工程
人工智能
深层神经网络
深度学习
方案(数学)
算术
算法
数学
程序设计语言
数学分析
电信
作者
Benoit Jacob,Skirmantas Kligys,Bo Chen,Menglong Zhu,Matthew F. Tang,Andrew Howard,Hartwig Adam,Dmitry Kalenichenko
标识
DOI:10.1109/cvpr.2018.00286
摘要
The rising popularity of intelligent mobile devices and the daunting computational cost of deep learning-based models call for efficient and accurate on-device inference schemes. We propose a quantization scheme that allows inference to be carried out using integer-only arithmetic, which can be implemented more efficiently than floating point inference on commonly available integer-only hardware. We also co-design a training procedure to preserve end-to-end model accuracy post quantization. As a result, the proposed quantization scheme improves the tradeoff between accuracy and on-device latency. The improvements are significant even on MobileNets, a model family known for run-time efficiency, and are demonstrated in ImageNet classification and COCO detection on popular CPUs.
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