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research article

A hardware/software co-design vision for deep learning at the edge

Ponzina, Flavio  
•
Machetti, Simone  
•
Rios, Marco Antonio  
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2022
IEEE Micro

The growing popularity of edgeAI requires novel solutions to support the deployment of compute-intense algorithms in embedded devices. In this article, we advocate for a holistic approach, where application-level transformations are jointly conceived with dedicated hardware platforms. We embody such a stance in a strategy that employs ensemble-based algorithmic transformations to increase robustness and accuracy in Convolutional Neural Networks (CNNs), enabling the aggressive quantization of weights and activations. Opportunities offered by algorithmic optimizations are then harnessed in domain-specific hardware solutions, such as the use of multiple ultra-low-power processing cores, the provision of shared acceleration resources, the presence of independently power-managed memory banks, and voltage scaling to ultra-low levels, greatly reducing (up to 60% in our experiments) energy requirements. Furthermore, we show that aggressive quantization schemes can be leveraged to perform efficient computations directly in memory banks, adopting in-memory computing solutions. We showcase that the combination of parallel in-memory execution and aggressive quantization leads to more than 70% energy and latency gains compared to baseline implementations.

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Type
research article
DOI
10.1109/MM.2022.3195617
Author(s)
Ponzina, Flavio  
Machetti, Simone  
Rios, Marco Antonio  
Denkinger, Benoît Walter  
Levisse, Alexandre Sébastien Julien  
Ansaloni, Giovanni  
Peon Quiros, Miguel  
Atienza Alonso, David  
Date Issued

2022

Published in
IEEE Micro
Volume

42

Issue

6

Start page

48

End page

54

Subjects

EdgeAI

•

HW/SW co-design

•

Low-power

Note

Special Issue on Artificial Intelligence at the Edge

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
ESL  
FunderGrant Number

H2020

863337

EU funding

725657

Swiss foundations

200020_182009

Available on Infoscience
July 29, 2022
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/189495
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