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Why R? | Basic Syntax and Operations
R Introduction: Part I
course content

Course Content

R Introduction: Part I

R Introduction: Part I

1. Basic Syntax and Operations
2. Basic Data Types and Vectors
3. Factors

bookWhy R?

Hello and welcome! If you're here, you're likely curious about R and why it's such a big deal in the world of data science, so let's discuss why it is a fantastic tool for analyzing and visualizing data.

But what makes R stand out in a sea of programming languages?

Key Features of R

  • Statistical Powerhouse: R was designed by statisticians, for statisticians. Its rich library of statistical and graphical methods includes linear and nonlinear modeling, classical statistical tests, time-series analysis, classification, clustering, and more;
  • Free and Open Source: R is free and open-source software, meaning you can use it without any cost. Additionally, it has a vibrant community that contributes to its extensive package ecosystem, constantly expanding R's capabilities;
  • Highly Extensible: The R environment can be extended via packages. There are over 15,000 packages available on CRAN (the Comprehensive R Archive Network), catering to a wide range of statistical, graphical, and machine learning tasks;
  • Data Manipulation and Cleaning: R excels at data manipulation and cleaning providing intuitive and powerful tools for transforming and organizing data;
  • Data Visualization: One of R's standout features is its data visualization capabilities. In particular, it is renowned for creating complex and aesthetically pleasing visualizations with minimal code.

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Section 1. Chapter 1
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