Publication detail
Energy Complexity Model for Convolutional Neural Networks
ŠÍMA, J. VIDNEROVÁ, P. MRÁZEK, V.
Original Title
Energy Complexity Model for Convolutional Neural Networks
Type
conference paper
Language
English
Original Abstract
The energy efficiency of hardware implementations of convolutional neural networks (CNNs) is critical to their widespread deployment in low-power mobile devices. Recently, a plethora of methods have been proposed providing energy-optimal mappings of CNNs onto diverse hardware accelerators. Their estimated power consumption is related to specific implementation details and hardware parameters, which does not allow for machine-independent exploration of CNN energy measures. In this paper, we introduce a simplified theoretical energy complexity model for CNNs, based on only two-level memory hierarchy that captures asymptotically all important sources of power consumption of different CNN hardware implementations. We calculate energy complexity in this model for two common dataflows which, according to statistical tests, fits asymptotically very well the power consumption estimated by the Time/Accelergy program for convolutional layers on the Simba and Eyeriss hardware platforms. The model opens the possibility of proving principal limits on the energy efficiency of CNN hardware accelerators.
Keywords
energy complexity, neural networks
Authors
ŠÍMA, J.; VIDNEROVÁ, P.; MRÁZEK, V.
Released
29. 9. 2023
Publisher
Springer Nature Switzerland AG
Location
Heraklion
ISBN
978-3-031-44203-2
Book
Artificial Neural Networks and Machine Learning - ICANN 2023: 32nd International Conference on Artificial Neural Networks
Edition
Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)
Pages from
186
Pages to
198
Pages count
12
BibTex
@inproceedings{BUT185188,
author="ŠÍMA, J. and VIDNEROVÁ, P. and MRÁZEK, V.",
title="Energy Complexity Model for Convolutional Neural Networks",
booktitle="Artificial Neural Networks and Machine Learning - ICANN 2023: 32nd International Conference on Artificial Neural Networks",
year="2023",
series="Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)",
pages="186--198",
publisher="Springer Nature Switzerland AG",
address="Heraklion",
doi="10.1007/978-3-031-44204-9\{_}16",
isbn="978-3-031-44203-2"
}