Good Data Visualisation with R

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Women working on art

 

In Person

This course will focus on developing practical skills for visualising data in R, primarily using the ggplot2 package.

The first session offers an introduction to the ggplot2 package and a practical demonstration of the package. It focuses on topics such as:

  • Ggplot2 syntax
  • Basic plots with ggplot2
  • Deeper customisation of plots, including labels, colour maps, and re-sizing/re-positioning legends
  • Exporting plots

The second session focusses on some principles for using data visualisation in research. A more freeform practical exercise with example data is then offered, and attendees can attempt to replicate and improve visualisations. This covers processes that include:

  • Different types of plots and when and where each might be best used
  • The pitfalls of misleading data visualisation
  • Introduction to some more advanced visualisation possibilities

The third session will cover the visualisation of textual data. Researchers often wish to work with unstructured text data, often collected from archives and the internet. We will discuss effective visualisation of this data, including:

  • Different types of plots and their areas of application
  • Plot design, common pitfalls, and what makes text data visualization effective

The course will ultimately help to develop a foundational understanding of Visualisation in R. Crucially, this will foster a familiarity with the principles of data visualisation and the capabilities of the software, allowing attendees to confidently apply these, or indeed seek out new concepts for their current and future research.

This is an intermediate level course. Intermediate sessions explore specific aspects of the method (libraries, tools etc.). Students must have a basic background in R. This includes, at least the basic data types in R, how to install and load packages, and how to use functions, pipes, and apply/map functions. It will be sufficient for students to have taken the Introduction to Programming with R and RStudio course

Those who have registered to take part will receive an email with full details on how to get ready for the course.

 

This course will be taught by Rhys Davies and Lucia Michielin.

After taking part in this event, you may decide that you need some further help in applying what you have learnt to your research. If so, you can book a Data Surgery meeting with one of our training fellows.

More details about Data Surgeries.

If you’re new to this training event format, or to CDCS training events in general, read more on what to expect from CDCS training. Here you will also find details of our cancellation and no-show policy, which applies to this event.

 

If you are looking for other training on data visualisation, you can have a look at:

 

Return to the Training Homepage to see other available events.

Room 4.35, Edinburgh Futures Institute

This room is on Level 4, in the North East side of the building.

When you enter via the level 2 East entrance on Middle Meadow Walk, the room will be on the 4th floor straight ahead.

When you enter via the level 2 North entrance on Lauriston Place underneath the clock tower, the room will be on the 4th floor to your left.

When you enter via the level 0 South entrance on Porters Walk (opposite Tribe Yoga), the room will be on the 4th floor to your right.

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