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How To Create a Flexdashboard

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INTRODUCTION

With flexdashboard, you can easily create interactive dashboards for R. What is amazing about it is that with R Markdown, you can publish a group of related data visualizations as a dashboard.

Additionally, it supports a wide variety of components, including htmlwidgets; base, lattice, and grid graphics; tabular data; gauges and value boxes and text annotations.

It is flexible and easy to specify rows and column-based layouts. Components are intelligently re-sized to fill the browser and adapted for display on mobile devices.

In combination with Shiny, you can create a high quality dashboard with interactive visualizations.

INSTALLATION

Install the flexdashboard package from CRAN, as follows:

install.packages("flexdashboard")
To create a flexdashboard, you create an R Markdown document with the flexdashboard::flex_dashboard output format. You can do this from within RStudio using the New R Markdown dialog:

If you are not using RStudio, you can create a new flexdashboard R Markdown file from the R console:

rmarkdown::draft("dashboard.Rmd", template = "flex_dashboard", package = "flexdashboard")

BASICS

A flexdashboard can either be static or dynamic (a Shiny interactive document.) A wide variety of components can be included in flexdashboard layouts, including:

1. Interactive JavaScript data visualizations based on htmlwidgets

2. R graphical output, including base, lattice and grid graphics

3. Tabular data (with optional sorting, filtering and paging)

4. Value boxes for highlighting important summary data

5. Gauges for displaying values on a meter within a specified range

6. Text annotations of various kinds

LAYOUT

Single Column (Fill)

Dashboards are divided into columns and rows with output components delineated using level 3 markdown headers (###). By default, dashboards are laid out within a single column with charts stacked vertically within a column and sized to fill available browser height. For example, this layout defines a single column with two charts that fills available browser space:

--- title: "Single Column (Fill)" output: flexdashboard::flex_dashboard: vertical_layout: fill ---

### Chart 1

“`{r}

“`

### Chart 2

“`{r}

“`

Produces:

Single Column (Scroll)

Depending on the nature of your dashboard (number of components, ideal height of components, etc.), you may prefer a scrolling layout where components occupy their natural height and the browser scrolls when additional vertical space is needed. You can specify this behavior via the vertical_layout: scroll option. For example, here is the definition of a single column scrolling layout with three charts:

--- title: "Single Column (Scrolling)" output: flexdashboard::flex_dashboard: vertical_layout: scroll ---

### Chart 1

“`{r}

“`

### Chart 2

“`{r}

“`

### Chart 3

“`{r}

“`

Produces:

Multiple Columns

To lay out charts using multiple columns, you introduce a level 2 markdown header (————–) for each column. For example, this dashboard displays 3 charts split across two columns:

--- title: "Multiple Columns" output: flexdashboard::flex_dashboard ---

Column {data-width=600}
————————————-

### Chart 1

“`{r}

“`

Column {data-width=400}
————————————-

### Chart 2

“`{r}

“`

### Chart 3

“`{r}

“`

Produces:

Row Orientation
You can also choose to orient dashboards row-wise rather than column-wise by specifying the orientation: rows option. For example, this layout defines two rows: the first has a single chart and the second has two charts:

--- title: "Row Orientation" output: flexdashboard::flex_dashboard: orientation: rows ---

Row
————————————-

### Chart 1

“`{r}

“`

Row
————————————-

### Chart 2

“`{r}

“`

### Chart 3

“`{r}

“`

Produces:

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