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Hashemite University, Zarqa,
Jordan
E-mail: hmood@hu.edu.jo
Received: 10 June 2020 I Accepted: 28
June 2020 I Published: 18 July 2020
I
Article ID: MRJBM-20-020
Copyright © 2020 Author(s) retain the
copyright of this article.
This article is published under the terms of the
Creative Commons Attribution
License 4.0. |
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The current
development and the wide use of Artificial Intelligence (AI)
applications and systems have increased the demand for a faster
development processes that could compromise the quality
assurance of the whole development life-cycle. Quality plays a
vital role in software reliability and easier maintenance after
sale while the quality requirements are not well-defined in most
software production processes due to rapid delivery milestones.
This paper discusses the essential and essence of the Total
Quality Management (TQM) for AI system development and
summarizes the similarities between products and systems
development life-cycles. In this paper, we propose the
implementation of TQM throughout the different stages in AI
system development and AI system training process. Finally, this
paper recommends a set of measures to ensure a minimum level of
quality assurance before system deployment.
Keywords: Artificial Intelligence System, Development,
Process Control, Quality Assurance, Total Quality Management
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