Data Science
Beginner
R Programming
A comprehensive, beginner-friendly guide to learning R Programming. Master the fundamentals and build real-world projects.
30 chapters
2h 30m
4.5
(199)
What you'll learn
- Introduction to R Programming
- Installing R and RStudio
- R Syntax and Basics
- Variables and Data Types in R
- Operators and Expressions
- Conditional Statements and Loops
- Functions in R
- Vectors in R
Course content
30 chapters · 2h 30m- 1 Introduction to R Programming 5 min
- 2 Installing R and RStudio 5 min
- 3 R Syntax and Basics 5 min
- 4 Variables and Data Types in R 5 min
- 5 Operators and Expressions 5 min
- 6 Conditional Statements and Loops 5 min
- 7 Functions in R 5 min
- 8 Vectors in R 5 min
- 9 Matrices and Arrays 5 min
- 10 Lists and Data Frames 5 min
- 11 Working with Strings in R 5 min
- 12 File Handling in R 5 min
- 13 Data Import and Export 5 min
- 14 Data Cleaning in R 5 min
- 15 Data Manipulation with dplyr 5 min
- 16 Data Visualization with ggplot2 5 min
- 17 Statistical Analysis in R 5 min
- 18 Probability Distributions 5 min
- 19 Hypothesis Testing 5 min
- 20 Correlation and Regression Analysis 5 min
- 21 Time Series Analysis in R 5 min
- 22 Exploratory Data Analysis (EDA) 5 min
- 23 Machine Learning Basics in R 5 min
- 24 Classification and Clustering 5 min
- 25 Working with Real-World Datasets 5 min
- 26 R Shiny Basics 5 min
- 27 Advanced R Programming Concepts 5 min
- 28 R Programming Interview Preparation 5 min
- 29 Performance Optimization in R 5 min
- 30 Final Projects and Real-World Applications 5 min