Boosting Software Development Using Machine Learning: 7 (Artificial Intelligence-Enhanced Software and Systems Engineering, 7)

Boosting Software Development Using Machine Learning: 7 (Artificial Intelligence-Enhanced Software and Systems Engineering, 7)

Boosting Software Development Using Machine Learning: 7 (Artificial Intelligence-Enhanced Software and Systems Engineering, 7)

by: Tirimula Rao Benala (Editor), Satchidananda Dehuri (Editor), Rajib Mall (Editor), Margarita N. Favorskaya (Editor)

Publisher: Springer

Publication Date: 2025-05-24

Language: English

Print Length: 342 pages

ISBN-10: 3031881877

ISBN-13: 9783031881879

Book Description

This book explores the transformative effects of AI and ML on software engineering. It emphasizes the potential of cutting-edge software development technologies such as Generative AI and ML applications. This book incorporates data-driven strategies across the entire software development life cycle, from requirements elicitation and design to coding, testing, and deployment. It illustrates the evolution from traditional frameworks to agile and DevOps methodologies. The potential of Generative AI for automating repetitive tasks and enhancing code quality is highlighted, along with ML applications in optimizing testing, effort estimation, design pattern recognition, fault prediction, debugging, and security through anomaly detection. These techniques have significantly improved software development efficiency, predictability, and project management effectiveness. While remarkable progress has been made, much remains to be done in this evolving area. This edited book is a timely effort toward advancing the field and promoting interdisciplinary collaboration in addressing ethical, security, and technical challenges.

Editorial Reviews

This book explores the transformative effects of AI and ML on software engineering. It emphasizes the potential of cutting-edge software development technologies such as Generative AI and ML applications. This book incorporates data-driven strategies across the entire software development life cycle, from requirements elicitation and design to coding, testing, and deployment. It illustrates the evolution from traditional frameworks to agile and DevOps methodologies. The potential of Generative AI for automating repetitive tasks and enhancing code quality is highlighted, along with ML applications in optimizing testing, effort estimation, design pattern recognition, fault prediction, debugging, and security through anomaly detection. These techniques have significantly improved software development efficiency, predictability, and project management effectiveness. While remarkable progress has been made, much remains to be done in this evolving area. This edited book is a timely effort toward advancing the field and promoting interdisciplinary collaboration in addressing ethical, security, and technical challenges.

Amazon Page

电子书代发PDF格式价格10我要求助
未经允许不得转载:Wow! eBook » Boosting Software Development Using Machine Learning: 7 (Artificial Intelligence-Enhanced Software and Systems Engineering, 7)