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Campfire: Compressible, Regularization-Free, Structured Sparse Training
  for Hardware Accelerators

Campfire: Compressible, Regularization-Free, Structured Sparse Training for Hardware Accelerators

9 January 2020
Noah Gamboa
Kais Kudrolli
Anand Dhoot
A. Pedram
ArXivPDFHTML

Papers citing "Campfire: Compressible, Regularization-Free, Structured Sparse Training for Hardware Accelerators"

3 / 3 papers shown
Title
Compress and Compare: Interactively Evaluating Efficiency and Behavior
  Across ML Model Compression Experiments
Compress and Compare: Interactively Evaluating Efficiency and Behavior Across ML Model Compression Experiments
Angie Boggust
Venkatesh Sivaraman
Yannick Assogba
Donghao Ren
Dominik Moritz
Fred Hohman
VLM
50
3
0
06 Aug 2024
Lost in Pruning: The Effects of Pruning Neural Networks beyond Test
  Accuracy
Lost in Pruning: The Effects of Pruning Neural Networks beyond Test Accuracy
Lucas Liebenwein
Cenk Baykal
Brandon Carter
David K Gifford
Daniela Rus
AAML
27
71
0
04 Mar 2021
FlexSA: Flexible Systolic Array Architecture for Efficient Pruned DNN
  Model Training
FlexSA: Flexible Systolic Array Architecture for Efficient Pruned DNN Model Training
Sangkug Lym
M. Erez
13
25
0
27 Apr 2020
1