www.isi.report

ISI Report

(International Science Information Report)

(International Standards Indexing Report)

Refining the Functioning and Scalability of Algebraic Multigrid

Open PDF in Browser
European Journal of Scientific and Applied Sciences, 2023

Autour(s)

  • John Balen, Lolade Nojeem, Wilmin Bitala, Utian Junta, Ibrina Browndi

Abstract

Algebraic Multigrid (AMG) is a widely used technique for solving large, sparse linear systems arising in various scientific and engineering applications. While AMG has shown great promise in terms of its ability to accelerate iterative solvers and handle complex geometries, its performance and scalability can be limited in certain cases. This article reviews recent developments in AMG algorithms that aim to improve its performance and scalability. We focus on two main areas: parallelization strategies and preconditioning techniques. Through the literature review and experiments, we demonstrate the effectiveness of these developments in improving the performance and scalability of AMG. Algebraic Multigrid (AMG) is a widely-used numerical technique for solving large sparse linear systems arising from many scientific and engineering applications. However, its performance and scalability can be limited due to the increasing size and complexity of modern datasets. This paper aims to explore recent developments in improving the performance and scalability of AMG, with a focus on parallel and distributed computing techniques. The research methodology includes a literature review of recent advancements in this area and a performance analysis of parallel AMG solvers. The results demonstrate the effectiveness of these techniques in improving the performance and scalability of AMG on modern datasets. Algebraic Multigrid (AMG) is a popular technique for solving linear systems arising from a wide range of applications. However, its performance and scalability can be limited when applied to large-scale problems with complex structures. In this article, we review recent advances in improving the performance and scalability of AMG methods. Specifically, we focus on parallelization techniques, adaptive algorithms, and preconditioning strategies that have been developed to enhance the efficiency and robustness of AMG solvers. We also highlight future research directions and challenges in this field. Algebraic Multigrid (AMG) is a widely used method in solving large scale linear systems. However, when it comes to high performance computing, the performance and scalability of AMG become crucial factors. In this paper, we investigate different approaches to improving the performance and scalability of AMG, including parallel computing, coarse grid selection, and preconditioning techniques. We also present experimental results that demonstrate the effectiveness of these approaches on different types of problems.

About ISI Report:

www.isi.report access to a wide range of reputable ISI Journals and accurate citation data. The platform empowers users to analyze critical metrics such as Impact Factor, H-index, Journal Ranking, and Citation Analysis, supporting precise evaluation of Research Impact and Research Visibility. Through Journal Citation Reports and other Scholarly Metrics, it provides essential guidance for journal selection, effective publication strategies, and informed research decisions. Its Publishing & Submission workflow includes Peer Review, compliance with Author Guidelines, Manuscript Preparation, and Publication Timeline management, with both Open Access and Close Access options for flexible dissemination. Adherence to Research Quality & Ethics standards, including Plagiarism Check, Editorial Board oversight, Research Methodology, and Literature Review support, along with Digital Object Identifier (DOI) assignment, ensures high-quality, traceable publications. Researchers can maximize their impact through Research Citation management, enhanced Research Collaboration, and access to Research Funding opportunities. Publishing via www.isi.report and its affiliated platform www.isi.ac increases the likelihood of Indexing and international recognition, with articles available in multiple formats, including physical and online versions. These platforms play a critical role in advancing research quality, improving Research Visibility and Research Impact, and guiding scholars toward scientific growth, influence, and widespread dissemination of their work.

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.