Original paper
Universal Deep Neural Network Compression
Volume: 14, Issue: 4, Pages: 715 - 726
Published: May 1, 2020
Abstract
We consider compression of deep neural networks (DNNs) by weight quantization and lossless source coding for memory-efficient deployment. Whereas the previous work addressed non-universal scalar quantization and entropy source coding, we for the first time introduce universal DNN compression by universal vector quantization and universal source coding. In particular, the proposed scheme utilizes universal lattice quantization, which randomizes...
Paper Details
Title
Universal Deep Neural Network Compression
Published Date
May 1, 2020
Volume
14
Issue
4
Pages
715 - 726
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