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Min Soo Kim
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Efficient Mitchell’s approximate log multipliers for convolutional neural networks
MS Kim, AA Del Barrio, LT Oliveira, R Hermida, N Bagherzadeh
IEEE Transactions on Computers 68 (5), 660-675, 2018
1252018
The effects of approximate multiplication on convolutional neural networks
MS Kim, AA Del Barrio, H Kim, N Bagherzadeh
IEEE Transactions on Emerging Topics in Computing 10 (2), 904-916, 2021
622021
Low-power implementation of Mitchell's approximate logarithmic multiplication for convolutional neural networks
MS Kim, AA Del Barrio, R Hermida, N Bagherzadeh
2018 23rd Asia and South Pacific design automation conference (ASP-DAC), 617-622, 2018
582018
Cost-effective, energy-efficient, and scalable storage computing for large-scale AI applications
J Do, VC Ferreira, H Bobarshad, M Torabzadehkashi, S Rezaei, ...
ACM Transactions on Storage (TOS) 16 (4), 1-37, 2020
422020
PLAM: A posit logarithm-approximate multiplier
R Murillo, AA Del Barrio, G Botella, MS Kim, HJ Kim, N Bagherzadeh
IEEE Transactions on Emerging Topics in Computing 10 (4), 2079-2085, 2021
342021
A cost-efficient iterative truncated logarithmic multiplication for convolutional neural networks
HJ Kim, MS Kim, AA Del Barrio, N Bagherzadeh
2019 IEEE 26th symposium on computer arithmetic (ARITH), 108-111, 2019
332019
Design of Power-Efficient FPGA Convolutional Cores with Approximate Log Multiplier.
LT Oliveira, MS Kim, AADB García, N Bagherzadeh, R Menotti
ESANN, 2019
102019
PLAM: A Posit Logarithm-Approximate Multiplier for Power Efficient Posit-based DNNs
R Murillo, AAD Barrio, G Botella, MS Kim, H Kim, N Bagherzadeh
arXiv Computer Science, Machine Learning (Feb 2021), 2021
22021
Cost-Efficient Approximate Log Multipliers for Convolutional Neural Networks
MS Kim
University of California, Irvine, 2020
2020
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