The IRMA Community
Newsletters
Research IRM
Click a keyword to search titles using our InfoSci-OnDemand powered search:
|
AI-Driven Research Methodologies: Revolutionizing Data-Driven Discoveries in Engineering and Physical Sciences
|
|
Author(s): Muhammad Usman Tariq (Abu Dhabi University, UAE & University College Cork, Ireland)
Copyright: 2025
Pages: 26
Source title:
Optimizing Research Techniques and Learning Strategies With Digital Technologies
Source Author(s)/Editor(s): J. Sadhik Basha (International Maritime College Oman, National University of Science and Technology, Oman), Taofeek Olanrewaju Alade (Department of Science Cluster, International Maritime College Oman, National University of Science and Technology, Oman), Mitha Obaid Amur Al Khazimi (Department of Science Cluster, National University of Science and Technology, Oman), Ranjit Vasudevan (Department of Science Cluster, National University of Science and Technology, Oman)and Jahanzeb Bahadur Khan (Department of Science Cluster, National University of Science and Technology, Oman)
DOI: 10.4018/979-8-3693-7863-2.ch004
Purchase
|
Abstract
This chapter examines how artificial intelligence (AI) is changing how engineering and physical science researchers do their work. It demonstrates how artificial intelligence (AI)-driven technologies—like machine learning deep learning and predictive analytics—are transforming conventional approaches by making it possible to process and analyse enormous datasets at previously unheard-of speeds and precision. In fields where sophisticated simulations and data patterns have produced ground-breaking discoveries such as materials science renewable energy aerospace engineering and manufacturing the chapter explores the integration of AI in these fields. It also discusses how AI can stimulate interdisciplinary collaboration increase predictive power and improve research efficiency. The chapter also covers obstacles such as the requirement for transparent algorithms ethical issues and data biases. The usefulness of these developments is demonstrated through case studies of effective AI applications in scientific research.
Related Content
|
William Chakabwata, Veronica McKay.
© 2026.
28 pages.
|
|
Orlando M. Saiz.
© 2026.
30 pages.
|
|
Pratham Prakash Parekh.
© 2026.
34 pages.
|
|
Mustafa Kayyali.
© 2026.
30 pages.
|
|
Tricia J. Stewart, Nicole DeRonck, Samantha Tisi.
© 2026.
26 pages.
|
|
Thalia Mulvihill.
© 2026.
20 pages.
|
|
Alan Swiercz, Melissa Mesek.
© 2026.
30 pages.
|
|
|