AI-POWERED SOFTWARE QUALITY ASSURANCE: TRANSFORMING TESTING WITH AI AND MACHINE LEARNING

AI-POWERED SOFTWARE QUALITY ASSURANCE: TRANSFORMING TESTING WITH AI AND MACHINE LEARNING
Author :
Publisher : Xoffencerpublication
Total Pages : 191
Release :
ISBN-10 : 9788119534449
ISBN-13 : 8119534441
Rating : 4/5 (49 Downloads)

Book Synopsis AI-POWERED SOFTWARE QUALITY ASSURANCE: TRANSFORMING TESTING WITH AI AND MACHINE LEARNING by : Amit Bhanushali

Download or read book AI-POWERED SOFTWARE QUALITY ASSURANCE: TRANSFORMING TESTING WITH AI AND MACHINE LEARNING written by Amit Bhanushali and published by Xoffencerpublication. This book was released on 2023-10-30 with total page 191 pages. Available in PDF, EPUB and Kindle. Book excerpt: New challenges have arisen for the construction of contemporary AI-based systems as a result of recent developments in artificial intelligence (AI), in particular machine learning (ML) and deep learning (DL), and their incorporation into software-based systems utilized in all sectors of the economy. These systems place a heavy reliance on data, are constantly evolving and bettering themselves, and display a degree of intrinsic nondeterminism. As a consequence, their behavior displays a degree of uncertainty that is universally acknowledged. As a result of these characteristics, the field of software engineering has to devise adaptable and innovative approaches to quality assurance (QA) that are capable of both constructive and in-depth analysis. This is essential in order to guarantee the product's high quality throughout the whole development process as well as while it is being put to use in actual settings. On the other hand, as Borg has pointed out, the concept of "quality" in AI-based systems does not yet have a definitive definition at this time. As was noted before, the terminology that is utilized in the field of artificial intelligence and software engineering is distinct from one another. When developing AI-based systems, the knowledge and experiences of a wide variety of organizations are combined and utilized in the construction process. While this does lead to new and creative ways, exciting breakthroughs, and a major advancement in what can be done with current AI-based systems, it also encourages the babel of language, concepts, perceptions, and underlying assumptions and principles. While this does lead to new and creative methods, exciting breakthroughs, and a substantial advancement in what can be done with current AI-based systems, this does lead to new and creative approaches. While this does result in novel and creative methods, exciting discoveries, and a significant leap forward in terms of what can be accomplished with contemporary AI-based systems, it does so in spite of the fact that. For instance, in the field of machine learning (ML), the term "regression" may be used to refer to regression models or regression analysis, but in the field of software engineering (SE), the term "regression" is used to refer to regression testing. However, in the context of machine learning (ML), the term "testing" refers to the evaluation of performance characteristics (such as accuracy) of a trained model using a holdout validation dataset. In the context of software engineering (SE), "testing" is described as the activity of executing the system in order to uncover errors. As a consequence of this, there is an increasing amount of confusion, as well as the potential of solutions that are in contradiction with one another, about how to approach quality assurance for AI-based systems and how to deal with the challenges that are associated with it. This is because of the fact that there are a growing number of solutions that are based on AI. Although the authors of this study begin their investigation from the perspective of software engineering, their ultimate goal is to include and talk about a wide variety of different points of view, all of which will eventually come together to provide a multi-dimensional picture of quality assurance for AI-based systems. While the authors of this study begin their investigation from the perspective of software engineering, their ultimate goal is to include and talk about a wide variety of different points of view. In the first part of this study project, our primary focus is on defining the terminologies related with artificial intelligence quality assurance. In the following section, Section 3, we will discuss the challenges that are involved with QA for AI. In the last part of the inquiry, we will summarize what we found and form our conclusions.


AI-POWERED SOFTWARE QUALITY ASSURANCE: TRANSFORMING TESTING WITH AI AND MACHINE LEARNING Related Books

AI-POWERED SOFTWARE QUALITY ASSURANCE: TRANSFORMING TESTING WITH AI AND MACHINE LEARNING
Language: en
Pages: 191
Authors: Amit Bhanushali
Categories: Computers
Type: BOOK - Published: 2023-10-30 - Publisher: Xoffencerpublication

DOWNLOAD EBOOK

New challenges have arisen for the construction of contemporary AI-based systems as a result of recent developments in artificial intelligence (AI), in particul
AI-Infused Test Automation: Revolutionizing Software Testing through Artificial Intelligence
Language: en
Pages: 348
Authors: Anup Sahoo
Categories: Juvenile Nonfiction
Type: BOOK - Published: 2023-11-27 - Publisher: OrangeBooks Publication

DOWNLOAD EBOOK

AI-Infused Test Automation: Revolutionizing Software Testing through Artificial Intelligence is an enlightening book that explores the transformative power of A
AI-DRIVEN TEST STRATEGIES Enhancing Quality and Efficiency in Software Development
Language: en
Pages: 162
Authors: Phani Durga Nanda Kishore Kommisetty
Categories: Business & Economics
Type: BOOK - Published: - Publisher: JEC PUBLICATION

DOWNLOAD EBOOK

.....
The Future of Software Quality Assurance
Language: en
Pages: 272
Authors: Stephan Goericke
Categories: Computers
Type: BOOK - Published: 2019-11-19 - Publisher: Springer Nature

DOWNLOAD EBOOK

This open access book, published to mark the 15th anniversary of the International Software Quality Institute (iSQI), is intended to raise the profile of softwa
How to Develop a QA Strategy with Generative AI
Language: en
Pages: 71
Authors: Bosun Sogeke
Categories: Business & Economics
Type: BOOK - Published: 2024-08-16 - Publisher: Bosun Sogeke

DOWNLOAD EBOOK

In the rapidly evolving landscape of software development, Quality Assurance (QA) plays a pivotal role in ensuring the reliability and performance of applicatio