R Course Finder
Find an R course quickly, using the filters on the right.
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Note: Prices shown for all paid courses on DataCamp platform are monthly subscriptions, which give full access to all courses on this platform.
Showing 1–10 of 37 results
R Programming A-Z™: R For Data Science With Real Exercises!€ 0.00
Learn Programming In R And R Studio. Data Analytics, Data Science, Statistical Analysis, Packages, Functions, GGPlot2
R Programming€ 39.16
In this course you will learn how to program in R and how to use R for effective data analysis
R Programming: Advanced Analytics In R For Data Science€ 0.00
Take Your R & R Studio Skills To The Next Level. Data Analytics, Data Science, Statistical Analysis in Business, GGPlot2.
Linear Regression and Modeling€ 63.19
This course introduces simple and multiple linear regression models
Advanced R Programming€ 44.50
This course covers advanced topics in R programming that are necessary for developing powerful, robust, and reusable data science tools.
[Intermediate] Spatial Data Analysis with R, QGIS & More
Become an Open source GIS Guru and Tackle Spatial Data Analysis Using R, QGIS, GRASS & GOOGLE EARTH
Become an R master and dominate data science
Bayesian Statistics€ 63.19
This course describes Bayesian statistics, in which one’s inferences about parameters or hypotheses are updated as evidence accumulates
Beginning Data Visualization with R€ 22.25
Learn how to create and interpret basic data visualization using the programming language R.
Building R Packages€ 0.00
This course covers the primary means by which R software is organized and distributed to others. We cover R package development, writing good documentation and vignettes, writing robust software, cross-platform development, continuous integration tools, and distributing packages via CRAN and GitHub. Learners will produce R packages that satisfy the criteria for submission to CRAN.