Software pre-requisites
In order to develop a reactR widget, you’ll need to
install R and optionally RStudio. If you’re on Windows, you should also
install Rtools.
For an excellent general introduction to R package concepts, check
out the R packages online book.
In addition, you’ll need to install the following JavaScript tools on
your machine:
- Node.js: JavaScript engine and
runtime for development outside of browsers. Provides the
node
and npm
commands.
- Yarn: Command-line
dependency management tool, provides the
yarn
command.
To follow along in this vignette, you’ll also need the following R
packages:
install.packages(c("shiny", "devtools", "usethis", "htmlwidgets", "reactR"))
Scaffolding
To create a new widget you can call scaffoldReactWidget
to generate the basic structure and build configuration. This function
will:
- Create the .R, .js, .yaml, and .json files required by your
widget;
- If provided, take an npm
package name and version as a named list with
name
and
version
elements. For example, the npm package
foo
at version ^1.2.0
would be expressed as
list(name = "foo", version = "^1.2.0")
. The package, if
provided, will be added to the new widget’s package.json
as
a build dependency.
The following R code will create an R package named
sparklines, then provide the templating for creating an
htmlwidget powered by the react-sparklines
npm package:
# Create the R package
usethis::create_package("~/sparklines")
# Inject the widget templating
withr::with_dir(
"~/sparklines",
reactR::scaffoldReactWidget("sparklines", list("react-sparklines" = "^1.7.0"), edit = FALSE)
)
Building and installing
Building the JavaScript
The next step is to navigate to the newly-created
sparklines
project and run the following R commands:
system("yarn install")
system("yarn run webpack")
yarn install
downloads all of the dependencies
listed in package.json
and creates a new file,
yarn.lock
. You should add this file to revision control. It
will be updated whenever you change dependencies and run
yarn install
. Note: you only need to run it after
modifying package.json. For further documentation on
yarn install
, see the yarn
documentation.
yarn run webpack
compiles the ES2015 JavaScript source
file at srcjs/sparklines.js
into
inst/htmlwidgets/sparklines.js
. The later file is one
actually used by the R package and includes all the relevant JavaScript
dependencies in a version of JavaScript that most browsers understand.
Note that, if you add --mode=development
to the end of this
command, it will include a source
map is included with the compiled JavaScript, which makes JavaScript
debugging much easier, but hopefully you won’t need to do much of any
JavaScript debugging.
yarn run webpack
is not strictly a yarn
command. In fact, yarn run
simply delegates to the webpack program. Webpack’s
configuration is generated by scaffoldReactWidget
in the
file webpack.config.js
, but you can always change this
configuration and/or modify the yarn run webpack
command to
suit your needs.
Installing the R package
Now that the widget’s JavaScript is compiled, go ahead and install
the R package:
devtools::document()
devtools::install(quick = TRUE)
Alternatively, in RStudio, you can use the keyboard shortcuts
Ctrl+Shift+D
and Ctrl-Shift-B
to document and
build the package. (On macOS, the shortcuts are Cmd+Shift+D
and Cmd+Shift+B
)
Run the included demo
Now that the widget’s JavaScript is compiled, and the R package is
installed, run app.R
to see a demo in action:
Alternatively, in RStudio, you can open app.R
and press
Ctrl-Shift-Enter
(Cmd-Shift-Enter
on macOS).
You should see something like the following appear in the Viewer
pane:
Authoring a React binding
At this point, we’ve built some scaffolding for an htmlwidget powered
by React. Let’s modify it to create an interface to the
react-sparklines
library. Authoring the interface requires
some changes on both the JavaScript and R side, but most of the hard
thinking will be in figuring how best to design your interface. To give
you an example of how this could work, let’s build an interface to the
Sparklines
component of the react-sparklines library.
First, outline an interface
Note that the examples in this section are just to demonstrate API
possibilities and need not be pasted into any file.
Consider the following example taken from the react-sparklines
documentation.
import React from 'react';
import { Sparklines } from 'react-sparklines';
<Sparklines data={sampleData}>
<SparklinesLine color="#56b45d" />
<SparklinesSpots style={{ fill: "#56b45d" }} />
</Sparklines>
You have some choice in terms of how to design an R interface to this
sort of React library, but usually it makes sense to have one function
per component and have the arguments to that function feed into the
properties of that React component. In other words, our goal is to
create an R function that allows users of our package to recreate this
example with the following code:
library(sparklines)
sparklines(
data = sampleData,
sparklinesLine(color = "#56b45d"),
sparklinesSpots(style = list(fill = "#56b45d"))
)
The following sections show how to implement this R interface from
our scaffolded widget.
R implementation
Consider the template that reactR::scaffoldReactWidget()
provided for us:
sparklines <- function(message, width = NULL, height = NULL, elementId = NULL) {
# describe a React component to send to the browser for rendering.
content <- htmltools::tag("div", list(message))
# create widget
htmlwidgets::createWidget(
name = 'sparklines',
reactR::reactMarkup(content),
width = width,
height = height,
package = 'sparklines',
elementId = elementId
)
}
This function is designed to simply display a message within an HTML
div using reactR and htmlwidgets. The
critical piece here that makes it all work is
reactR::reactMarkup()
. This function can prepare a payload
containing a mix of HTML tags (constructed via
htmltools::tag()
), React components (constructed via
reactR::component()
), or character vectors in a such way
that the reactR and htmlwidgets
toolchain will understand and know how to render in the browser
(assuming we’ve imported our React component appropriately, as we cover
later). Thus, to send a <Sparklines>
react component
instead of an HTML <div>
, we could simply change:
content <- htmltools::tag("div", list(message))
to
reactR::component("Sparklines", list(message))
Remember, though, that we’d like <Sparklines>
to
consume a data
property and also accept other valid
components (e.g., <SparklinesLine>
,
<SparklinesSpot>
, etc) from this library as children.
So, we could change the body and signature of sparklines()
in the following way:
sparklines <- function(data, ..., width = NULL, height = NULL) {
# describe a React component to send to the browser for rendering.
content <- reactR::component(
"Sparklines",
list(data = data, ...)
)
# create widget
htmlwidgets::createWidget(
name = 'sparklines',
reactR::reactMarkup(content),
width = width,
height = height,
package = 'sparklines'
)
}
At this point, we define functions that make it easy for the user to
create the other components by adding these to
R/sparklines.R
#' @export
sparklinesLine <- function(...) {
reactR::React$SparklinesLine(...)
}
#' @export
sparklinesSpots <- function(...) {
reactR::React$SparklinesSpots(...)
}
JavaScript changes
In order for the reactR toolchain to know how to
render components from the ‘react-sparklines’ library, we need to
register the React components on the JavaScript side. This can be done
in the srcjs/sparklines.js
file which currently looks like
this:
import { reactWidget } from 'reactR';
reactWidget('sparklines', 'output', {});
First, reactWidget
is imported
from the 'reactR'
JavaScript module. This function will
register the React components we want within the reactR
and htmlwidgets toolchain. Note that the
'reactR'
JavaScript is an html dependency, but webpack is
configured in webpack.config.js
to consider it a module, so
it’s available to us here via import
syntax.
Then, there’s a call to reactWidget
, and we pass it
three arguments:
- The name of the widget (
'sparklines'
)
- The type of the widget (
'output'
)
- The React components that should be exposed to the widget. In this
template, we didn’t have to include any because it’s just rendering an
HTML div.
Instead of passing an empty object ({}
) as the React
components, we provide an object with all the components we need from
the ‘react-sparklines’ module:
import { Sparklines, SparklinesLine, SparklinesSpots } from 'react-sparklines';
import { reactWidget } from 'reactR';
reactWidget('sparklines', 'output', {
Sparklines: Sparklines,
SparklinesLine: SparklinesLine,
SparklinesSpots: SparklinesSpots
});
Go for a spin
Now that we’ve made the necessary changes to the JavaScript and R
source code, it’s time to compile the JavaScript and install the R
package:
system("yarn install")
system("yarn run webpack")
devtools::document()
devtools::install()
library(sparklines)
sparklines(rnorm(10), sparklinesLine())
This should open up the sparklines()
widget in your
browser. If it does, congratulations, you created a React-based
htmlwidget!
Shiny integration
The scaffolding template already provides the glue you need to get
your reactR widget to render in Shiny.
The two relevant functions are renderSparklines()
and
sparklinesOutput()
. You shouldn’t need to modify these
functions — they should work out of the box. You will, however, want to
modify the example Shiny app in the app.R
file:
library(shiny)
library(sparklines)
ui <- fluidPage(
titlePanel("Sparklines library"),
sliderInput("n", label = "Number of samples", min = 2, max = 1000, value = 100),
sparklinesOutput("myWidget")
)
server <- function(input, output, session) {
output$myWidget <- renderSparklines({
sparklines(
rnorm(input$n),
sparklinesLine()
)
})
}
shinyApp(ui, server)
Now, when you run shiny::runApp()
, you should see your
react-based htmlwidget rendering in shiny app!
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.