2020
DOI: 10.48550/arxiv.2002.00104
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Post-Training Piecewise Linear Quantization for Deep Neural Networks

Abstract: Quantization plays an important role in the energy-efficient deployment of deep neural networks on resource-limited devices. Posttraining quantization is highly desirable since it does not require retraining or access to the full training dataset. The well-established uniform scheme for post-training quantization achieves satisfactory results by converting neural networks from full-precision to 8-bit fixed-point integers. However, it suffers from significant performance degradation when quantizing to lower bit… Show more

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