Detail výsledku

NASCaps: A Framework for Neural Architecture Search to Optimize the Accuracy and Hardware Efficiency of Convolutional Capsule Networks

MARCHISIO, A.; MASSA, A.; MRÁZEK, V.; BUSSOLINO, B.; MARTINA, M.; SHAFIQUE, M. NASCaps: A Framework for Neural Architecture Search to Optimize the Accuracy and Hardware Efficiency of Convolutional Capsule Networks. In IEEE/ACM International Conference on Computer-Aided Design (ICCAD '20). Virtual Event: Association for Computing Machinery, 2020. p. 1-9. ISBN: 978-1-4503-8026-3.
Typ
článek ve sborníku konference
Jazyk
anglicky
Autoři
MARCHISIO, A.
MASSA, A.
Mrázek Vojtěch, Ing., Ph.D., UPSY (FIT)
BUSSOLINO, B.
MARTINA, M.
Shafique Muhammad, FIT (FIT)
Abstrakt

Deep Neural Networks (DNNs) have made significant improvements to reach the desired accuracy to be employed in a wide variety of Machine Learning (ML) applications. Recently the Google Brain's team demonstrated the ability of Capsule Networks (CapsNets) to encode and learn spatial correlations between different input features, thereby obtaining superior learning capabilities compared to traditional (i.e., non-capsule based) DNNs. However, designing CapsNets using conventional methods is a tedious job and incurs significant training effort. Recent studies have shown that powerful methods to automatically select the best/optimal DNN model configuration for a given set of applications and a training dataset are based on the Neural Architecture Search (NAS) algorithms. Moreover, due to their extreme computational and memory requirements, DNNs are employed using the specialized hardware accelerators in IoT-Edge/CPS devices. In this paper, we propose NASCaps, an automated framework for the hardware-aware NAS of different types of DNNs, covering both traditional convolutional DNNs and CapsNets. We study the efficacy of deploying a multi-objective Genetic Algorithm (e.g., based on the NSGA-II algorithm). The proposed framework can jointly optimize the network accuracy and the corresponding hardware efficiency, expressed in terms of energy, memory, and latency of a given hardware accelerator executing the DNN inference. Besides supporting the traditional DNN layers, our framework is the first to model and supports the specialized capsule layers and dynamic routing in the NAS-flow. We evaluate our framework on different datasets, generating different network configurations, and demonstrate the tradeoffs between the different output metrics. We will open-source the complete framework and configurations of the Pareto-optimal architectures at https://github.com/ehw-fit/nascaps.

Klíčová slova

Deep Neural Networks, DNNs, Capsule Networks, Evolutionary Algorithms,Genetic Algorithms, Neural Architecture Search, Hardware Accelerators,Accuracy, Energy Efficiency, Memory, Latency, Design Space, Multi-Objective,Optimization.

URL
Rok
2020
Strany
1–9
Sborník
IEEE/ACM International Conference on Computer-Aided Design (ICCAD '20)
Konference
IEEE/ACM International Conference On Computer-Aided Design
ISBN
978-1-4503-8026-3
Vydavatel
Association for Computing Machinery
Místo
Virtual Event
DOI
UT WoS
000671087100096
EID Scopus
BibTeX
@inproceedings{BUT168136,
  author="MARCHISIO, A. and MASSA, A. and MRÁZEK, V. and BUSSOLINO, B. and MARTINA, M. and SHAFIQUE, M.",
  title="NASCaps: A Framework for Neural Architecture Search to Optimize the Accuracy and Hardware Efficiency of Convolutional Capsule Networks",
  booktitle="IEEE/ACM International Conference on Computer-Aided Design (ICCAD '20)",
  year="2020",
  pages="1--9",
  publisher="Association for Computing Machinery",
  address="Virtual Event",
  doi="10.1145/3400302.3415731",
  isbn="978-1-4503-8026-3",
  url="https://arxiv.org/abs/2008.08476"
}
Projekty
Computer-Aided Quantitative Synthesis, GAČR, Juniorské granty, GJ20-02328Y, zahájení: 2020-01-01, ukončení: 2022-12-31, ukončen
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