R Tutorial : Constructing rbokeh Layers (Part 1)
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AI Workflow Automation70%
Key Takeaways
Constructs rbokeh layers for interactive data visualization in R
Original Description
Want to learn more? Take the full course at https://learn.datacamp.com/courses/interactive-data-visualization-with-rbokeh at your own pace. More than a video, you'll learn hands-on coding & quickly apply skills to your daily work.
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In the previous lesson, you got an overview about rbokeh and in the exercises you saw examples of rbokeh plots. In this lesson you will learn how rbokeh plots are constructed and how to specify data and arguments.
rbokeh plots are constructed by initializing a figure(). This is like an empty canvas you can lay out and then add layers to.
To add layers, you can use the pipe operator.
If you previously used ggplot2, You will notice that while the the pipe operator is used to add layers in rbokeh, the plus operator is used in ggplot2.
For example, let's say you want to plot life expectancy versus time in one country, Rwanda using the gapminder dataset.
First, you need to extract the entries corresponding to rwanda using the filter function with the condition country == Rwanda
To construct the plot, you can use figure(), followed by the pipe operator,
then you can add a lines layer using the ly_lines() function
In the ly_lines layer, you should pass
- year to the x argument, lifeExp to the y argument
- and the new dataframe data_rwanda to the data argument
The resulting plot shows a line with a significant drop in life expectancy around 1990, the year that marked the start of the war in Rwanda that lasted for almost four years.
This will produce the same output except for the axes labels. You will see later how to change the axes labels and You will learn more about the figure attributes in the next chapter.
In the course we will stick to the first way of specifiying data by passing the dataframe and the columns names.
Now Let's take a new dataset, the economins dataset from the ggplot2 package. The dataset includes stats about the US econmoics including the personal consumption expenditures(pce) in billions of dollars,
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