Efficiency and Scalability of Multi-lane Capsule Networks (MLCN)

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. T...

Full description

Saved in:
Bibliographic Details
Published in2019 31st International Symposium on Computer Architecture and High Performance Computing (SBAC-PAD) pp. 152 - 159
Main Authors Rosario, Vanderson M. do, Breternitz, Mauricio, Borin, Edson
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.10.2019
Subjects
Online AccessGet full text

Cover

Loading…
More Information
Summary: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. Further, we present 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.
ISSN:2643-3001
DOI:10.1109/SBAC-PAD.2019.00034