www.isi.ac

ISI Journals

(International Scientific Indexing)

(Institute for Scientific Information)

Algebraic Multigrid and the Future of Computer Science

Open PDF in Browser
International Journal of Engineering and Applied Sciences, 2023

Autour(s)

  • Chidi Yun, Miki Shun, Keypi Jackson, Ladson Newiduom, Ibrina Browndi

Abstract

Algebraic Multigrid (AMG) is a powerful computational technique used in computer science to solve linear systems of equations quickly and efficiently. This article provides an in-depth review of AMG, including its history, principles, and current state-of-the-art techniques. Additionally, the article explores the future of computer science, particularly with respect to the continued evolution of AMG and its impact on the field. The literature review reveals that AMG is still a popular and actively researched topic in computer science. Recent research has focused on improving the performance and scalability of AMG by developing new algorithms and parallel computing techniques. Algebraic Multigrid (AMG) is a powerful computational technique used in computer science to solve linear systems of equations quickly and efficiently. This article provides an in-depth review of AMG, including its history, principles, and current state-of-the-art techniques. Additionally, the article explores the future of computer science, particularly with respect to the continued evolution of AMG and its impact on the field. The literature review reveals that AMG is still a popular and actively researched topic in computer science. Recent research has focused on improving the performance and scalability of AMG by developing new algorithms and parallel computing techniques. Algebraic Multigrid (AMG) is a powerful and efficient method for solving linear systems of equations that arise in many scientific and engineering applications. This article explores the potential of AMG as a tool for addressing the increasingly complex and large-scale problems that are emerging in the field of computer science. Through a literature review and analysis of recent developments in AMG research, this article highlights the potential of AMG to enable breakthroughs in areas such as machine learning, big data analytics, and high-performance computing. The research methodology involves benchmarking, performance analysis, and simulation to evaluate the performance of AMG in a variety of computational settings. The results demonstrate the significant potential of AMG as a key technology for driving the future of computer science.

About ISI Journals:

www.isi.ac is a comprehensive and advanced platform for researchers and scientific authors, providing access to thousands of reputable ISI Journals and precise citation data. The platform enables professional analysis of key metrics such as Impact Factor, H-index, Journal Ranking, and Citation Analysis, supporting the evaluation of Research Impact and Research Visibility. With Journal Citation Reports and other Scholarly Metrics, it guides users in journal selection, optimizing publication strategies, and informed research decisions. The Publishing & Submission process includes Peer Review, adherence to Author Guidelines, Manuscript Preparation, and Publication Timeline tracking, with flexible Open Access and Close Access options. Standards of Research Quality & Ethics, including Plagiarism Check, Editorial Board oversight, Research Methodology, and Literature Review support, along with Digital Object Identifier (DOI) assignment, ensure high-quality, traceable publications. Researchers can maximize their scientific impact through Research Citation management, Research Collaboration, and Research Funding opportunities. By publishing in journals affiliated with www.isi.ac and its parallel platform www.isi.report, authors gain higher chances of Indexing and international visibility, with multiple formats available in physical and online versions. These platforms play a pivotal role in advancing research quality, enhancing Research Visibility and Research Impact, and guiding researchers toward scientific growth and recognition.

Special thanks to:

(Elsevier, Science Direct, Springer, Springer Nature, Wiley, Taylor & Francis, Nature Publishing Group (Nature journals), Oxford University Press, Cambridge University Press, SAGE Publications, CRC Press, Pearson Education, McGraw Hill, Cengage, Wolters Kluwer, IEEE Standards Association, Institute of Electrical and Electronics Engineers (IEEE), Association for Computing Machinery, American Chemical Society (ACS), Royal Society of Chemistry (RSC), Society for Industrial and Applied Mathematics (SIAM), American National Standards Institute, American Society of Mechanical Engineers, American Society of Civil Engineers, ASTM International, NFPA, Brazilian National Standards Organization, SAGE Journals, ProQuest, JSTOR, Emerald, Scholastic, Macmillan Learning, Hodder & Stoughton, MDPI, PLOS (Public Library of Science), Cambridge Scholars Publishing, Google Scholar, Scopus (Elsevier), Web of Science (Clarivate), DOAJ, arXiv, bioRxiv, medRxiv, EBSCOHost)

Powered by IS Indexing Software © All Rights Reserved.