This repository is build on the work of Garrett Grolemund from posit. In particular, it reuses an important part of the material he developed for tidyverse-related workshops, which is available at https://github.com/rstudio-education/remaster-the-tidyverse under the Creative Commons BY-SA 4.0 copyright.
The main webpage is at https://astamm.github.io/data-science-with-r/.
The class is organised in 9 parts each of which has its own set of slides and exercises. The slides are available in the above Data Wranging - Slides tab and the exercises in the above Data Wranging - Labs tab. The slides are written partly with Keynote (exported as PDFs) and partly in Quarto reveajs slides. The exercises are written in Quarto.
Part | Title | Slides | Exercises | Data |
---|---|---|---|---|
1 | Introduction | Quarto | ||
2 | Visualize Data | Quarto | ||
3 | Transform Data | Quarto | CSV | |
4 | Model Data | Quarto | ||
5 | Communicate Data | Quarto | ||
6 | Tidy Data | Quarto | ||
7 | Join Data | Quarto | ||
8 | Manipulate Data Types | Quarto | ||
9 | Manipulate Lists | Quarto |
The class is organised in 4 parts each of which has its own set of slides and exercises. The slides are available in the above Exploratory Data Analysis - Slides tab and the exercises in the the above Exploratory Data Analysis - Labs tab. The slides are written in Quarto revealjs slides. The exercises are written in Quarto.
Part | Title | Slides | Exercises |
---|---|---|---|
1 | Hypothesis Testing | Quarto | Quarto |
2 | Linear Regression | Quarto | Quarto |
3 | Principal Component Analysis | Quarto | Quarto |
4 | Clustering | Quarto | Quarto |
-
Quarto Drop extension: https://github.com/r-wasm/quarto-drop
-
R packages: