Publication detail

Evolutionary Neural Architecture Search Supporting Approximate Multipliers

PIŇOS, M. MRÁZEK, V. SEKANINA, L.

Original Title

Evolutionary Neural Architecture Search Supporting Approximate Multipliers

Type

conference paper

Language

English

Original Abstract

There is a growing interest in automated neural architecture search (NAS) methods. They are employed to routinely deliver high-quality neural network architectures for various challenging data sets and reduce the designer's effort. The NAS methods utilizing multi-objective evolutionary algorithms are especially useful when the objective is not only to minimize the network error but also to minimize the number of parameters (weights) or power consumption of the inference phase. We propose a multi-objective NAS method based on Cartesian genetic programming for evolving convolutional neural networks (CNN). The method allows approximate operations to be used in CNNs to reduce the power consumption of a target hardware implementation. During the NAS process, a suitable CNN architecture is evolved together with approximate multipliers to deliver the best trade-offs between the accuracy, network size, and power consumption. The most suitable approximate multipliers are automatically selected from a library of approximate multipliers. Evolved CNNs are compared with common human-created CNNs of a similar complexity on the CIFAR-10 benchmark problem.

Keywords

Approximate computing, Convolutional neural network, Cartesian genetic programming, Neuroevolution, Energy efficiency 

Authors

PIŇOS, M.; MRÁZEK, V.; SEKANINA, L.

Released

7. 4. 2021

Publisher

Springer Nature Switzerland AG

Location

Seville

ISBN

978-3-030-72812-0

Book

Genetic Programming, 24th European Conference, EuroGP 2021

Edition

Lecture Notes in Computer Science, vol 12691

Pages from

82

Pages to

97

Pages count

16

URL

BibTex

@inproceedings{BUT168488,
  author="Michal {Piňos} and Vojtěch {Mrázek} and Lukáš {Sekanina}",
  title="Evolutionary Neural Architecture Search Supporting Approximate Multipliers",
  booktitle="Genetic Programming, 24th European Conference, EuroGP 2021",
  year="2021",
  series="Lecture Notes in Computer Science, vol 12691",
  volume="12691",
  pages="82--97",
  publisher="Springer Nature Switzerland AG",
  address="Seville",
  doi="10.1007/978-3-030-72812-0\{_}6",
  isbn="978-3-030-72812-0",
  url="https://link.springer.com/chapter/10.1007%2F978-3-030-72812-0_6"
}