Program Image Intermediate Data Analysis with R and the Tidyverse

Intermediate Data Analysis with R and the Tidyverse

Other

Vrije Universiteit Amsterdam mapmarker icon Amsterdam Research university
Institution Logo Vrije Universiteit Amsterdam

Boost your R skills and analyse real data with all the Tidyverse tools for cleaning, transforming, visualizing, and modelling.

This course introduces the Tidyverse, a powerful collection of R packages that streamline data analysis in R. You'll learn the principles of "tidy data" and how to transform messy datasets into a structured format for effective analysis. The course covers data manipulation, the data science workflow, and key Tidyverse tools, including ggplot2 for creating insightful visualizations. Through hands-on exercises, you'll gain practical experience in wrangling, visualizing, and modelling data, equipping you with modern techniques to enhance your analytical workflow.

Course Format 

  • Dates: 19-23 January 2026
  • Attendance: Online only
  • Form of tuition: Online lectures and practical exercises
  • Form of assessment: Written assignment with code 
  • Language of instruction: English 
  • See the course curriculum

Course Level

  • Level: PhD/Postdoc candidates and professionals
  • English language requirement: B2 level or higher (equivalent to IELTS 6.5)

Workload 

  • Credits: Equivalent to 3 ECTS
  • Contact hours: 35
  • Self-study hours: 45

Language

English

Title

-

Duration

-

ECTS credits

Accreditation

Information not available

Tuition fee

Information not available


Admission

Check when you can start and what you have to pay!

Tuition fees  
Information not available
Information not available
Information not available
Start date App. deadline EU/EEA App. deadline Non-EU/EEA
19 Jan '26 8 Dec '25 8 Dec '25

Contact

Vrije Universiteit Amsterdam

Main address
De Boelelaan 1105
1081 HV Amsterdam
020-5985020

Ready to apply?

Visit course website chevron icon
Vrije Universiteit Amsterdam institution image
Vrije Universiteit Amsterdam institution image