Scientific journal paper Q1
Efficiency and scalability of Multi-Lane Capsule Networks (MLCN)
Vanderson Martins do Rosario (Rosario, V. M. Do); Maurício Breternitz (Breternitz, M.); Edson Borin (Borin, E.);
Journal Title
Journal of Parallel and Distributed Computing
Year (definitive publication)
2021
Language
English
Country
Netherlands
More Information
Web of Science®

Times Cited: 3

(Last checked: 2024-11-19 23:36)

View record in Web of Science®


: 0.3
Scopus

Times Cited: 3

(Last checked: 2024-11-19 03:25)

View record in Scopus


: 0.2
Google Scholar

Times Cited: 13

(Last checked: 2024-11-18 15:54)

View record in Google Scholar

Abstract
Some Deep Neural Networks (DNN) have what we call lanes, or they can be reorganized as such. Lanes are paths in the network which are data-independent and typically learn different features or add resilience to the network. Given their data-independence, lanes are amenable for parallel processing. The Multi-lane CapsNet (MLCN) is a proposed reorganization of the Capsule Network which is shown to achieve better accuracy while bringing highly-parallel lanes. However, the efficiency and scalability of MLCN had not been systematically examined. In this work, we study the MLCN network with multiple GPUs finding that it is 2x more efficient than the original CapsNet when using model-parallelism. We introduce the load balancing problem of distributing heterogeneous lanes in homogeneous or heterogeneous accelerators and show that a simple greedy heuristic can be almost 50% faster than a naïve random approach. Further, we show that we can generate MLCN models with heterogeneous lanes with a balanced fit for a given set of devices. We describe a Neural Architectural Search generating MLCN models matching the device's memory that are load balanced. This search discovered models with 18.6% better accuracy for CIFAR-10.
Acknowledgements
--
Keywords
Deep learning,Multi-lane,Capsule network
  • Computer and Information Sciences - Natural Sciences
Funding Records
Funding Reference Funding Entity
UIDB/04466/2020 Fundação para a Ciência e a Tecnologia

With the objective to increase the research activity directed towards the achievement of the United Nations 2030 Sustainable Development Goals, the possibility of associating scientific publications with the Sustainable Development Goals is now available in Ciência-IUL. These are the Sustainable Development Goals identified by the author(s) for this publication. For more detailed information on the Sustainable Development Goals, click here.