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Awesome Open Source

{timevis} - Create interactive timeline visualizations in R

R Build Status CRAN version

By Dean Attali · Demo

{timevis} lets you create rich and fully interactive timeline visualizations in R. Timelines can be included in Shiny apps and R markdown documents, or viewed from the R console and RStudio Viewer. {timevis} includes an extensive API to manipulate a timeline after creation, and supports getting data out of the visualization into R. This package is based on the visjs Timeline JavaScript library.

Need Shiny help? I’m available for consulting.
If you find {timevis} useful, please consider supporting my work to unlock rewards! ❤

This package is part of a larger ecosystem of packages with a shared vision: solving common Shiny issues and improving Shiny apps with minimal effort, minimal code changes, and straightforward documentation. Other packages for your Shiny apps:

Package Description Demo
shinyjs 💡 Easily improve the user experience of your Shiny apps in seconds 🔗
shinyalert 🗯️ Easily create pretty popup messages (modals) in Shiny 🔗
shinyscreenshot 📷 Capture screenshots of entire pages or parts of pages in Shiny apps 🔗
shinycssloaders ⌛ Add loading animations to a Shiny output while it’s recalculating 🔗
colourpicker 🎨 A colour picker tool for Shiny and for selecting colours in plots 🔗
shinybrowser 🌐 Find out information about a user’s web browser in Shiny apps 🔗
shinydisconnect 🔌 Show a nice message when a Shiny app disconnects or errors 🔗
shinyforms 📝 Easily create questionnaire-type forms with Shiny WIP

Demo

Click here to view an interactive demo of many {timevis} features.

Or check out examples from real users: Pet Records by Jenna Allen, Mohamad Ghassany’s life timeline, an English Premier League game timeline. If you create a cool timeline with {timevis} and want to share it, I’d love to hear about it!

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Table of contents

Installation

{timevis} is available through both CRAN and GitHub:

To install the stable CRAN version:

install.packages("timevis")

To install the latest development version from GitHub:

install.packages("remotes")
remotes::install_github("daattali/timevis")

How to use

You can view a minimal timeline without any data by simply running

library(timevis)
timevis()

Minimal timeline

You can add data to the timeline by supplying a data.frame

data <- data.frame(
  id      = 1:4,
  content = c("Item one"  , "Item two"  ,"Ranged item", "Item four"),
  start   = c("2016-01-10", "2016-01-11", "2016-01-20", "2016-02-14 15:00:00"),
  end     = c(NA          ,           NA, "2016-02-04", NA)
)

timevis(data)

Basic timeline

Every item must have a content and a start variable. If the item is a range rather than a single point in time, you can supply an end as well. id is only required if you want to access or manipulate an item. There are more variables that can be used in the data.frame – they are all documented in the help file for ?timevis() under the Data format section.

Slightly more advanced examples

The content of an item can even include HTML, which makes it easy to show any kind of data in a timeline, such as the matches of the 2014 World Cup:

World cup timeline

If you know some CSS, you can completely customize the look of the timeline:

Custom style timeline

By default, a timeline will show the current date as a red vertical line and will have zoom in/out buttons. You can supply many customization options to timevis() in order to get it just right (see ?timevis() for details).

Interactivity

The timeline lets the user interact with it seamlessly. You can click on the zoom in/out buttons or drag the timeline left/right in order to move to past/future dates.

If you set the editable = TRUE option, then the user will be able to add new items by double clicking, modify items by dragging, and delete items by selecting them.

Groups

You can use the groups feature to group together multiple items into different “buckets”. When using groups, all items with the same group are placed on one line. A vertical axis is displayed showing the group names. Grouping items can be useful for a wide range of applications, for example when showing availability of multiple people, rooms, or other resources next to each other. You can also think of groups as “adding a Y axis”, if that helps.

Here is an example of a timeline that has three groups: “Library”, “Gym”, and “Pool”:

Groups timeline

In order to use groups, items in the data need to have group ids, and a separate dataframe containing the group information needs to be provided. More information about using groups and the groups dataframe is available in the help file for ?timevis() under the Groups section.

Functions to manipulate a timeline

There are many functions that allow programmatic manipulation of a timeline. For example: addItem() programmatically adds a new item, centerItem() moves the timeline so that a given item is centered, setWindow() sets the start and end dates of the timeline, setOptions() updates the configuration options, and many more functions are available.

There are two ways to call these timeline manipulation functions:

1. Timeline manipulation using %>% on timevis()

You can manipulate a timeline widget during its creation by chaining functions to the timevis() call. For example:

timevis() %>%
  addItem(list(id = "item1", content = "one", start = "2016-08-01")) %>%
  centerItem("item1")

This method of manipulating a timeline is especially useful when creating timeline widgets in the R console or in R markdown documents because it can be used directly when initializing the widget.

2. Timeline manipulation using a timeline’s ID

In Shiny apps, you can manipulate a timeline widget at any point after its creation by referring to its ID. For example:

library(shiny)

ui 
    addItem("mytime", list(id = "item1", content = "one", start = "2016-08-01"))
    centerItem("mytime", "item1")
  })
}

shinyApp(ui = ui, server = server)

You can even chain these functions and use this manipulation code instead of the bold code:

addItem("mytime", list(id = "item1", content = "one", start = "2016-08-01")) %>%
  centerItem("item1")

Technical note: If you’re trying to understand how both methods of timeline manipulation work, it might seem very bizarre to you. The reason they work is that every manipulation function accepts either a timevis object or the ID of one. In order to make chaining work, the return value from these functions depend on the input: if a timevis object was given, then an updated timevis object is returned, and if an ID was given, then the same ID is returned.

In a Shiny app

You can add a timeline to a Shiny app by adding timevisOutput() to the UI and renderTimevis(timevis()) to the server.

Retrieving data from the widget

It is possible to retrieve data from a timeline in a Shiny app. When a timeline widget is created in a Shiny app, there are four pieces of information that are always accessible as Shiny inputs. These inputs have special names based on the timeline’s id. Suppose that a timeline is created with an outputId of “mytime”, then the following four input variables will be available:

  • input$mytime_data - will return a data.frame containing the data of the items in the timeline. The input is updated every time an item is modified, added, or removed.
  • input$mytime_ids - will return the IDs (a vector) of all the items in the timeline. The input is updated every time an item is added or removed from the timeline.
  • input$mytime_selected - will return the IDs (a vector) of the selected items in the timeline. The input is updated every time an item is selected or unselected by the user. Note that this will not get updated if an item is selected programmatically using the API functions.
  • input$mytime_window - will return a 2-element vector containing the minimum and maximum dates currently visible in the timeline. The input is updated every time the viewable window of dates is updated (by zooming or moving the window).
  • input$mytime_visible - will return a list of IDs of items currently visible in the timeline.

You can view examples of many of the features supported by checking out the demo Shiny app. If you want to see how those examples were created, the full code for the examples is inside inst/example.

Lastly, if you want to learn how to develop an htmlwidget to have similar features as this package, you can check out the timevisBasic package or my tutorial on htmlwidgets tips.


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