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Bit Efficient Quantization for Deep Neural Networks

Computer Vision and Pattern Recognition 2019-10-14 v1 Machine Learning Performance

Abstract

Quantization for deep neural networks have afforded models for edge devices that use less on-board memory and enable efficient low-power inference. In this paper, we present a comparison of model-parameter driven quantization approaches that can achieve as low as 3-bit precision without affecting accuracy. The post-training quantization approaches are data-free, and the resulting weight values are closely tied to the dataset distribution on which the model has converged to optimality. We show quantization results for a number of state-of-art deep neural networks (DNN) using large dataset like ImageNet. To better analyze quantization results, we describe the overall range and local sparsity of values afforded through various quantization schemes. We show the methods to lower bit-precision beyond quantization limits with object class clustering.

Keywords

Cite

@article{arxiv.1910.04877,
  title  = {Bit Efficient Quantization for Deep Neural Networks},
  author = {Prateeth Nayak and David Zhang and Sek Chai},
  journal= {arXiv preprint arXiv:1910.04877},
  year   = {2019}
}

Comments

EMC2 - NeurIPS workshop 2019, #latentai