Course Outline

Introduction

Core Programming and Syntax in R

  • Variables
  • Loops
  • Conditional statements

Fundamentals of R

  • What are vectors?
  • Functions and packages in R

Preparing the Development Environment

  • Installing and configuring R

R and Excel

  • Moving data between R and Excel
  • Working with bivarite analysis in R and Excel

DescTools

  • Controlling output in R
  • Running DescTools functions on variables

R Tidyverse

  • Loading and filtering data
  • Pivoting with R
  • Using Power Query

Data Visualization with R

  • Creating static visualizations with GGPlot
  • Layering multiple charts
  • Transforming visualizations into HTML widgets with Plotly
  • Working with interactive tables
  • Using R Markdown

Summary and Conclusion

Requirements

  • Experience with Excel

Audience

  • Data Analysts
 21 Hours

Number of participants



Price per participant

Testimonials (5)

Related Courses

Introduction to Data Visualization with Tidyverse and R

7 Hours

Advanced R

7 Hours

Algorithmic Trading with Python and R

14 Hours

Anomaly Detection with Python and R

14 Hours

Programming with Big Data in R

21 Hours

R Fundamentals

21 Hours

Cluster Analysis with R and SAS

14 Hours

Data and Analytics - from the ground up

42 Hours

Data Analytics With R

21 Hours

Data Mining with R

14 Hours

Deep Learning for Finance (with R)

28 Hours

Deep Learning for Banking (with R)

28 Hours

Data Mining & Machine Learning with R

14 Hours

Foundation R

7 Hours

Forecasting with R

14 Hours

Related Categories

1