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Divide and Conquer: Leveraging Intermediate Feature Representations for
  Quantized Training of Neural Networks

Divide and Conquer: Leveraging Intermediate Feature Representations for Quantized Training of Neural Networks

14 June 2019
Ahmed T. Elthakeb
Prannoy Pilligundla
Alex Cloninger
H. Esmaeilzadeh
    MQ
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Papers citing "Divide and Conquer: Leveraging Intermediate Feature Representations for Quantized Training of Neural Networks"

3 / 3 papers shown
Title
Deep Recursive Embedding for High-Dimensional Data
Zixia Zhou
Yuanyuan Wang
B. Lelieveldt
Qian Tao
24
7
0
12 Apr 2021
ReLeQ: A Reinforcement Learning Approach for Deep Quantization of Neural
  Networks
ReLeQ: A Reinforcement Learning Approach for Deep Quantization of Neural Networks
Ahmed T. Elthakeb
Prannoy Pilligundla
Fatemehsadat Mireshghallah
Amir Yazdanbakhsh
H. Esmaeilzadeh
MQ
55
68
0
05 Nov 2018
Incremental Network Quantization: Towards Lossless CNNs with
  Low-Precision Weights
Incremental Network Quantization: Towards Lossless CNNs with Low-Precision Weights
Aojun Zhou
Anbang Yao
Yiwen Guo
Lin Xu
Yurong Chen
MQ
337
1,049
0
10 Feb 2017
1