International Journal of

ADVANCED AND APPLIED SCIENCES

EISSN: 2313-3724, Print ISSN: 2313-626X

Frequency: 12

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 Volume 9, Issue 6 (June 2022), Pages: 36-42

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 Original Research Paper

 A design in system architecture based on mobile cloud computing for a virtual try-on solution

 Author(s): Duong Van Ngoc, Nguyen Tien Dat *

 Affiliation(s):

 Modeling and Simulation, Viettel High Technology Industries Corporation, Hanoi, Vietnam

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 * Corresponding Author. 

  Corresponding author's ORCID profile: https://orcid.org/0000-0002-7537-8708

 Digital Object Identifier: 

 https://doi.org/10.21833/ijaas.2022.06.005

 Abstract:

Cloud computing is an emerging technology in this digital century. It provides an excellent but low-cost source for database storage, computing power, applications, and services through an internet-delivered cloud platform. Thanks to the cost savings in investing and maintaining physical data centers, as well as the stability of Quality of Service (QoS), it has no restrictions on company size or sector for enterprises to shift their operations to a cloud platform. The fashion industry, particularly the fashion e-commerce sector, is a case study in leveraging the cloud platform via a technology called “Virtual try-on” (VTO). VTO solution allows fashion brands to increase the shopping experience, however, requires installing and maintaining a bulky system for implementation. There are different methods and approaches to design architectures using cloud computing, however, there have not been many studies addressing tasks related to machine learning that uses the high Graphics Processing Unit (GPU) encountered in VTO solutions. To design a scheduler that could optimize the system performance while lowering operational expenses in VTO solutions, this research proposes a system to (1) handle synchronous model and asynchronous model separately and clearly, (2) perform multi-layered task processing architecture by hashing task ID and implementing a queue management system. This method would satisfy three major requirements: (1) Avoid complex hardware requirements for users, (2) Ensure the system stability and the ease of horizontal and vertical extension, and (3) Protect user information privacy. 

 © 2022 The Authors. Published by IASE.

 This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).

 Keywords: Cloud computing, Amazon web service, Virtual try-on

 Article History: Received 20 December 2021, Received in revised form 24 March 2022, Accepted 25 March 2022

 Acknowledgment 

The authors would like to thank all members of the 3DR team for their contribution. This research is fully funded by Viettel High Technology Industries Corporation.

 Compliance with ethical standards

 Conflict of interest: The author(s) declared no potential conflicts of interest with respect to the research, authorship, and/or publication of this article.

 Citation:

 Ngoc DV and Dat NT (2022). A design in system architecture based on mobile cloud computing for a virtual try-on solution. International Journal of Advanced and Applied Sciences, 9(6): 36-42

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 Figures

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 Tables

 Table 1 Table 2 Table 3 Table 4 Table 5

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