Review Article Open Access

Big Data Analytics (BDA) in the Research Landscape: Using Python and VOSviewer for Advanced Bibliometric Analysis

Samsul Arifin1, Muhammad Faisal1, Monica Mayeni Manurung1, Bakti Siregar1, Andi Pujo Rahadi1, Abdullah Eli2, Gilang Ramadhan2 and Ilham Fikriansyah2
  • 1 Department of Data Science, Faculty of Engineering and Design, Institut Teknologi Sains Bandung, Bekasi, West Java, Indonesia
  • 2 Miningtech BC Research Team, PT Berau Coal, Tanjung Redeb, Berau, Kalimantan Timur, Indonesia

Abstract

Big data analytics has become a key element in research and development in various fields. With the ability to analyze large and complex amounts of data, this technology allows researchers to identify patterns, trends, and insights that were not seen before. This article explores how big data analytics is applied in various disciplines, including computer science, engineering, and mathematics. We use Python for data processing and analysis, as well as VOSviewer for in-depth bibliometric visualization. The study highlights recent developments in big data analysis methodologies, the challenges they face, and the potential for the future. Our findings suggest that the integration of advanced analytical techniques can accelerate scientific discovery and improve understanding across different research domains.

Journal of Computer Science
Volume 21 No. 2, 2025, 347-362

DOI: https://doi.org/10.3844/jcssp.2025.347.362

Submitted On: 26 August 2024 Published On: 16 January 2025

How to Cite: Arifin, S., Faisal, M., Manurung, M. M., Siregar, B., Rahadi, A. P., Eli, A., Ramadhan, G. & Fikriansyah, I. (2025). Big Data Analytics (BDA) in the Research Landscape: Using Python and VOSviewer for Advanced Bibliometric Analysis. Journal of Computer Science, 21(2), 347-362. https://doi.org/10.3844/jcssp.2025.347.362

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Keywords

  • Big Data Analytics
  • Python
  • VOSviewer
  • Bibliometric Analysis
  • Data Science
  • Machine Learning
  • Research Trends
  • Data Visualization