Decks are a way to save a set of analyses so that you or your team can refer back to them later, export to Excel or PowerPoint, or create a Crunch Dashboard. Each deck is made up of a set of slides, and slides can either be analysis or markdown slides. All slides have a title & subtitle, while analysis slides contain an analysis and markdown slides contain markdown formatted text.
While a good slide generally appears simple to the viewer, a lot depends on getting the analysis exactly right, and so creating them does require setting the analysis’s attributes just right. The attributes of a slide’s analysis are:
The recipes in this cookbook all start from the pets example dataset
(available from newExampleDataset()
).
suppressPackageStartupMessages({
library(purrr)
library(crunch)
})
options("crunch.show.progress" = FALSE)
ds <- newExampleDataset()
You want to create a new deck and add slides to it.
A deck is created on a dataset with the command
newDeck()
. It takes the dataset, a title for the deck, and
can take is_public=TRUE
if the deck should be made public
to other users of the dataset (it defaults to FALSE
).
After the deck is created, the newSlide()
function adds
a slide.
deck <- newDeck(ds, "Q3 Pets Deck", is_public = TRUE)
private_deck <- newDeck(ds, "Private Deck")
# If no `vizType` is specified, defaults to a table
slide <- newSlide(deck, ~q1, title = "Table of Favorite Pet")
# Example of setting a vizType and filter
slide <- newSlide(
deck,
mean(ndogs) ~ country,
title = "Dot Plot of Mean Dogs by Country",
display_settings = list(vizType = "dotplot"),
filter = ds$q1 == "Dog"
)
deck <- refresh(deck)
You want to add a slide to a deck that has already been made.
The decks()
function access the decks catalog for a
dataset. You can select one name or position and then add to it.
You want to add a markdown slide
You want to include an image on a markdown slide
The function markdownSlideImage()
helps add an image to
a markdown slide. The function takes a path to an image on your local
machine, and you use it as an unnamed argument of
newMarkdownSlide()
.
You want to edit a slide that’s already been created.
Slides can be accessed from the deck’s slide catalog, available from
the slides()
command. You can retrieve them by their title
or position.
The helper functions title<-
,
subtitle<-
, query<-
,
weight<-
, filters<-
,
transforms<-
, displaySettings<-
and
vizSpecs<-
help set options on a analysis slide, and the
function slideMarkdown<-
edits the text of a markdown
slide.
# Move title to subtitle and change the title
slide <- slides(deck)[["Table of Favorite Pet"]]
subtitle(slide) <- title(slide)
title(slide) <- "Cats are the most popular"
# Rename a category
slide <- slides(deck)[[2]]
transforms(slide) <- list(
rows_dimension = makeDimTransform(rename = c("AUS" = "Australia"))
)
# Edit a markdown slide
slide <- slides(deck)[[3]]
slideMarkdown(slide) <- "**Replacement text**"
You want to delete a slide from a deck.
Queries define the variables and summary measures used for the
slide’s analysis. They use the formula notation used by the crunch
function crtabs()
which is based on base R’s
xtabs()
.
You want to get the frequencies of a single categorical or multiple response variable.
You want to get a crosstab (or a frequency from two variables’ joint distribution)
The query for a multivariate frequency uses the +
to
separate the variables on the right hand side of the formula (for
example ~var1 + var2
).
You want to get the frequencies from a categorical array variable
A categorical array contributes two dimensions to the analysis, a
“categories” dimension and a “subvariables” dimension. If your query
just specifies the variable, by default the categories dimension is used
first and the categories second, but you can specify the order by using
categories()
and subvaribles()
functions in
your query.
slide <- newSlide(
deck,
~allpets,
title = "Categorical array: default order"
)
slide <- newSlide(
deck,
~categories(allpets) + subvariables(allpets),
title = "Categorical array: categories on rows dimension"
)
The “categories” dimension cannot be the first dimension (used in the “tabs” of the analysis in a Crunch Dashboard) of a slide analysis that has 3 dimensions. Instead, to get the “tabs” dimension have the categorical array variable, choose one category to select, and create a Multiple Response variable out of it.
When trying to make a slide with a categorical array
(ca
) and another variables(cat
), the following
table shows the 6 queries that are valid and which dimension the web app
will display on each of the “rows”, “columns” and “tabs” dimensions.
Here we have chosen to select the category with name =
"category"
when using selectCategories
, but
any valid category id or name could be used instead.
query | rows | columns | tabs |
---|---|---|---|
~cat + categories(ca) + subvariables(ca) |
CA categories | CA subvariables | other variable |
~cat + subvariables(ca) + categories(ca) |
CA subvariables | CA categories | other variable |
~subvariables(ca) + categories(ca) + cat |
CA categories | other variable | CA subvariables |
~subvariables(ca) + cat + categories(ca) |
other variable | CA categories | CA subvariables |
~cat + selectCategories(ca, "category") |
other variable | CA subvariables | CA categories |
~selectCategories(ca, "category") + cat |
CA subvariables | other variable | CA categories |
You want to get the mean from a Numeric (Numeric Array) variable
A numeric summary measure like a mean goes on the left hand side of
the formula in a query. The right hand side cannot be empty, but to get
the mean of the whole dataset put 1
.
You want to make comparisons of frequencies of a set of Multiple Response variables with the same items (response)
A scorecard is a rectangular grid of different Multiple Response
variables with their items aligned. The query for a scorecard can be
created using the scorecard()
function.
Query results have “dimensions”, which are enumerated sets that the calculation’s results are formed in, such as the categories of a categorical variables or the items in a multiple response variables. Their behavior in the slide can be customized using dimension transforms.
A query result generally has up to three dimensions. The first is the
“rows_dimension”, second is the “columns” dimension and third is the
“tabs_dimension”. When using the transform
argument of
newSlide()
or setting the transforms<-
of a
slide directly, you form a named list with these dimensions as the
names. The helper function makeDimTransform()
can also help
create the dimension changes.
You want to make the colors of a dashboard tile use a pre-defined palette.
Each Crunch Dataset has a set of color palettes associated with it’s
account and folder. You can access the palettes using the
palettes()
or defaultPalette()
functions. Then
using the makeDimTransform()
function you can use this
palette. The colors are used in the order they appear and if more colors
are needed than provided by the palette, the default colors are
used.
slide <- newSlide(
deck,
~q1,
title = "Favorite pet using default palette",
display_settings = list(vizType = "groupedBarPlot"),
transform = list(
rows_dimension = makeDimTransform(colors = defaultPalette(ds))
)
)
graph_pal <- palettes(ds)[["purple palette"]]
slide <- newSlide(
deck,
~categories(petloc) + subvariables(petloc),
title = "Pets by location using another palette",
display_settings = list(vizType = "horizontalBarPlot"),
transform = list(
rows_dimension = makeDimTransform(colors = graph_pal)
)
)
You want to make the colors of a dashboard tile use a set of colors you specify in the script
If you want to specify the colors manually, you can also use a character vector of RGB hex codes.
You want to hide a dimension item (a category or subvariable) from the slide.
The hide
argument of makeDimTransform()
takes a category name or id, if the dimension is made from categories,
or a subvariable name or alias if the dimension is made from
subvariables (as in a Multiple Response variable or a subvariables
dimension of a Categorical Array or Numeric Array).
You want to create a slide with a display type other than table.
The default display of a tile is the table, but the
vizType
display setting chooses between other options. The
most commonly used vizType
s are: - table
(always available) - groupedBarPlot
,
stackedBarPlot
, horizontalBarPlot
,
horizontalStackedBarPlot
(available for queries based on a
count in any number of dimensions) - timeplot
(available
when the second dimension has a time component) - dotplot
(available for displays of means) - donut
(available only
for 1 dimensional count queries)
You want to use the settings from an existing slide to create a new one (or modify an existing one).
The functions displaySettings()
and
vizSpecs()
give access to the settings on an existing
slide. This slide can be a slide you’ve created from R or from the web
app, so that you can use the visual editor to perfect the look for one
slide and then use it for a whole set of slides. You can either set the
attributes directly, or use dput()
to print out the object
in a way that you can copy and paste into your code.
template_deck <- newDeck(ds, "Templates", is_public = TRUE)
slide <- newSlide(
template_deck,
~q1,
title = "Donut with value labels",
display_settings = list(vizType = "donut", showValueLabels = TRUE),
viz_specs = list(
default = list(
format = list(
decimal_places = list(percentages = 0L, other = 2L),
show_empty = FALSE
)
)
)
)
# Setting the slide `display_setting` and `viz_specs` directly:
slide <- newSlide(
deck,
~country,
title = "Country donut with value labels",
display_settings = displaySettings(template_deck[["Donut with value labels"]]),
viz_specs = vizSpecs(template_deck[["Donut with value labels"]])
)
# How to print out the structure in a format that can be copy and pasted into your code
print(dput(displaySettings(template_deck[["Donut with value labels"]])))
Sometimes you want to make many slides with related formatting to
create a document that gives a good high level overview of a dataset.
The [tabBook()
] function is designed to create a basic “top
line” report of simple crosstabs from a multitable, and is probably the
first thing you should check if you’re thinking of making bulk analyses.
However, tabBook()
does not allow for all of the
customization possible in a slide.
The trickiest part of bulk creating slides from R is iterating over
the variables. The general behind all of these cookbook recipes is to
get a list of variable aliases, iterate over them using them to get
other variable metadata. The trickiest part is to create a query formula
from a string, but the as.formula()
function helps with
this. This cookbook uses base R functions lapply()
and
paste0()
, but the “tidyverse” functions
purrr::walk()
and glue::glue()
are well-suited
to this task.
You want to create a simple report for every variable in a dataset.
Use the variables()
function to get the variables from a
dataset, and the aliases()
function to get their aliases.
Then use lapply()
to iterate over the variable aliases and
construct the slide using paste0()
and
as.formula()
.
deck <- newDeck(ds, "Full Dataset Topline Deck", is_public = TRUE)
var_aliases <- aliases(variables(ds))
slides <- lapply(var_aliases, function(alias) {
slide_query <- as.formula(paste0("~", alias))
slide_title <- paste0("Topline - ", name(ds[[alias]]))
newSlide(deck, slide_query, title = slide_title)
})
You want to create a simple report for every variable in a particular folder.
The variables()
function can also work on a folder, so
we can make a deck from variables in a folder in a similar way to making
one for a whole dataset.
deck <- newDeck(ds, "Folder Topline Deck", is_public = TRUE)
folder <- cd(ds, "Key Pet Indicators")
var_aliases <- aliases(variables(folder))
slides <- lapply(var_aliases, function(alias) {
slide_query <- as.formula(paste0("~", alias))
slide_title <- paste0("Topline - ", name(ds[[alias]]))
newSlide(deck, slide_query, title = slide_title)
})
You want to create crosstabs for many variables across a set of variables.
You can use lapply()
to iterate over both the row and
column variables of the crosstab.
deck <- newDeck(ds, "Crosstabs Deck", is_public = TRUE)
demo_vars <- aliases(variables(cd(ds, "Dimensions")))
var_aliases <- setdiff(aliases(variables(ds)), demo_vars) # don't cross demo vars with themselves
slides <- lapply(var_aliases, function(alias) {
# Add a slide before crosstabs of the univariate frequency
all_query <- as.formula(paste0("~", alias))
all_title <- paste0("Frequency - ", name(ds[[alias]]))
newSlide(deck, all_query, title = all_title)
lapply(demo_vars, function(demo_alias) {
crosstab_query <- as.formula(paste0("~", demo_alias, " + ", alias))
crosstab_title <- paste0("Crosstab - ", name(ds[[alias]]), " by ", name(ds[[demo_alias]]))
newSlide(deck, crosstab_query, title = crosstab_title)
})
})
You want to create a report with slides that vary based on the variable’s type.
You can create functions that create slides for a particular variable type and then choose which function to use based on the variable’s type while iterating.
cat_slide <- function(alias, ds, deck) {
slide_query <- as.formula(paste0("~", alias))
slide_title <- paste0(name(ds[[alias]]))
newSlide(
deck,
slide_query,
title = slide_title,
display_settings = list(vizType = "donut")
)
}
mr_slide <- function(alias, ds, deck) {
slide_query <- as.formula(paste0("~", alias))
slide_title <- paste0(name(ds[[alias]]))
newSlide(
deck,
slide_query,
title = slide_title,
display_settings = list(vizType = "groupedBarPlot")
)
}
numeric_slide <- function(alias, ds, deck) {
slide_query <- as.formula(paste0("mean(", alias, ") ~ wave"))
slide_title <- paste0(name(ds[[alias]]), " over time")
newSlide(
deck,
slide_query,
title = slide_title,
display_settings = list(vizType = "timeplot")
)
}
deck <- newDeck(ds, "Slides Customized by Variable Type", is_public = TRUE)
var_aliases <- c("q1", "allpets", "ndogs")
slides <- lapply(var_aliases, function(alias) {
switch(
type(ds[[alias]]),
"categorical" = cat_slide(alias, ds, deck),
"multiple_response" = mr_slide(alias, ds, deck),
"numeric" = numeric_slide(alias, ds, deck),
)
})