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2023-11-30

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Kumari, P., 2023. A comprehensive study of analysis of climate change patterns using R software. Biotica Research Today 5(11), 811-813.

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HOME / ARCHIVES / Vol. 5 No. 11 : November (2023) / Popular Article

A Comprehensive Study of Analysis of Climate Change Patterns Using R Software

Pragati Kumari*

Dept. of Fisheries Science, Kerala University of Fisheries and Ocean Studies, Kochi, Kerala (682 506), India

DOI: NIL

Keywords: Climate change, Data analysis, R programming, Visualization

Abstract


Currently, globally, climate change has far-reaching effects. Understanding the climate change patterns and trends that contribute to its development involves the analysis of climatic data. This study introduces a thorough method for utilizing the R programming language to analyse trends related to climate change. R offers a framework for data analysis and visualization that is versatile and powerful which makes it a perfect tool for analysing complicated climate-related data. The study covers several analytic issues, such as statistical modelling, data preparation and visualization methods. The objective of this paper is to highlight the informative guide for using R to analyse patterns.

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