TRACING THE EVOLUTION OF AI AND MACHINE LEARNING APPLICATIONS IN ADVANCING MATERIALS DISCOVERY AND PRODUCTION PROCESSES

Authors

  • Nwakamma Ninduwezuor-Ehiobu Fieldcore (Part of GE Verona), Canada
  • Olawe Alaba Tula NLNG Bonny Island, Rivers State, Nigeria
  • Chibuike Daraojimba University of Pretoria, South Africa
  • Kelechi Anthony Ofonagoro Kelanth Energy Solutions Limited, Nigeria
  • Oluwaseun Ayo Ogunjobi S A & G Beeline Consulting, Nigeria
  • Joachim Osheyor Gidiagba University of Johannesburg, South Africa
  • Blessed Afeyokalo Egbokhaebho Independent Researcher, UK
  • Adeyinka Alex Banso J-Cos Consult Ltd, Nigeria

DOI:

https://doi.org/10.51594/estj.v4i3.552

Abstract

This research paper examines the transformative role of artificial intelligence (AI) and machine learning (ML) in advancing materials discovery and production processes. The paper explores the historical evolution of AI and ML techniques, their application in materials science, challenges and limitations, emerging technologies, and ethical considerations. Key findings highlight how AI and ML accelerate materials discovery, optimize production processes, and enhance quality control. Emerging technologies such as generative models, reinforcement learning, and AI integration with experimental techniques are discussed. Ethical considerations encompass data privacy, intellectual property, job displacement, bias mitigation, transparency, and human-AI collaboration. The implications for the future underscore the profound impact of AI and ML on materials science, enabling faster discovery, efficient production, and novel material development.

Keywords: Artificial Intelligence, Machine Learning, Materials Discovery, Materials Production, Generative Models, Reinforcement Learning, Data Privacy, Ethical Considerations.

Published

2023-09-11 — Updated on 2023-09-14

Issue

Section

Articles