simplevis is a package of ggplot2 and leaflet wrapper functions designed to support effortless high quality ggplot2 and leaflet visualisations for reports or interactive shiny apps. The intent is that these can be made more consistently with less effort, code and expertise than would otherwise be required.
Below is a simple example dataset.
library(simplevis)
library(dplyr)
library(ggplot2)
data <- tibble::tribble(
~pet, ~count,
"Cat", 567,
"Dog", 443,
"Horse", 11)
data
#> # A tibble: 3 x 2
#> pet count
#> <chr> <dbl>
#> 1 Cat 567
#> 2 Dog 443
#> 3 Horse 11We can make a ggplot2 plot quickly. However, it does not look ready for a report or app.
ggplot(data) +
geom_col(aes(pet, count)) +
labs(title = "Wellington pets, 2020", x = "Pet", y = "Count")We can modify the design with ggplot2. However, there is a lot of code.
ggplot(data) +
geom_col(aes(pet, count), fill = "#085C75", width = 0.75) +
labs(title = "Wellington pets, 2020", x = "Pet", y = "Count") +
scale_y_continuous(expand = c(0, 0), limits = c(0, 600)) + #hardcoded = bad!
theme_minimal() +
theme(plot.title = element_text(family = "Helvetica", hjust = 0.5, size = 11, face = "bold", colour = "#000000")) +
theme(axis.title = element_text(family = "Helvetica", hjust = 0.5, size = 10, face = "plain", colour = "#323232")) +
theme(axis.text = element_text(family = "Helvetica", hjust = 0.5, size = 10, face = "plain", colour = "#323232")) +
theme(panel.grid.major.x = element_blank()) +
theme(panel.grid.minor.y = element_blank()) +
theme(axis.line = element_line(colour = "#323232", size = 0.3)) +
theme(axis.ticks = element_line(colour = "#323232", size = 0.3)) +
theme(axis.title.x = element_text(margin = margin(t = 10))) +
theme(axis.title.y = element_text(margin = margin(r = 10)))simplevis wraps these defaults into the functions, but allows the user to modify as required.
simplevis provides the following types of ggplot graph:
ggplot_hbar)ggplot_vbar)ggplot_line)ggplot_point)ggplot_box)For each graph type 4 functions are available.
ggplot not coloured or faceted (e.g. ggplot_hbar)plot_data <- ggplot2::diamonds %>%
mutate(cut = stringr::str_to_sentence(cut)) %>%
group_by(cut) %>%
summarise(average_price = mean(price)) %>%
mutate(average_price = round(average_price / 1000, 1)) %>%
mutate(cut = factor(cut, levels = c("Fair", "Good", "Very good", "Premium", "Ideal")))
ggplot_hbar(plot_data, average_price, cut,
title = "Average diamond price by cut",
x_title = "Average price ($US thousands)",
y_title = "Cut")ggplot coloured, but not faceted (e.g. ggplot_hbar_col)plot_data <- ggplot2::diamonds %>%
mutate(cut = stringr::str_to_sentence(cut)) %>%
group_by(cut, clarity) %>%
summarise(average_price = mean(price)) %>%
mutate(average_price = round(average_price / 1000, 1))
ggplot_hbar_col(plot_data, average_price, cut, clarity,
legend_ncol = 4,
title = "Average diamond price by cut and clarity",
x_title = "Average price ($US thousands)",
y_title = "Cut")ggplot facetted, but not coloured (e.g. ggplot_hbar_facet)plot_data <- ggplot2::diamonds %>%
mutate(cut = stringr::str_to_sentence(cut)) %>%
group_by(cut, clarity) %>%
summarise(average_price = mean(price)) %>%
mutate(average_price = round(average_price / 1000, 1))
ggplot_hbar_facet(plot_data, average_price, cut, clarity,
title = "Average diamond price by cut and clarity",
x_title = "Average price ($US thousands)",
y_title = "Cut")ggplot coloured and facetted (e.g. ggplot_hbar_col_facet)plot_data <- ggplot2::diamonds %>%
mutate(cut = stringr::str_to_sentence(cut)) %>%
group_by(cut, clarity, color) %>%
summarise(average_price = mean(price)) %>%
mutate(average_price = round(average_price / 1000, 1))
ggplot_hbar_col_facet(plot_data, average_price, color, clarity, cut,
legend_ncol = 4,
title = "Average diamond price by colour, clarity and cut",
x_title = "Average price ($US thousands)",
y_title = "Colour")These ggplot graphs have been designed that users can convert them easily to html interactive objects by wrapping them in plotly::ggplotly(plot). A customised tooltip can be provided using the tip_var argument in simplevis functions with plotly::ggplotly(plot, tooltip = "text). Automated tip_text columns can be created using the add_tip function.
plot_data <- storms %>%
group_by(year) %>%
summarise(average_wind = round(mean(wind), 2))
plot <- ggplot_vbar(data = plot_data,
x_var = year,
y_var = average_wind,
title = "Average wind speed of Atlantic storms, 1975\u20132015",
x_title = "Year",
y_title = "Average maximum sustained wind speed (knots)")
plotly::ggplotly(plot) %>%
plotly_camera() The variable types supported by the different groups of functions are outlined below.
simplevis provides the following types of ggplot map:
sf) mapsstars) mapsSimple feature (sf) maps are maps of points, lines or polygons.
The following functions are available:
ggplot_sfggplot_sf_colggplot_sf_facetggplot_sf_col_facetThese functions work in the same way as the ggplot graph functions, but with the following key differences:
sf object.POINT/MULTIPOINT, LINESTRING/MULTILINESTRING, or POLYGON/MULTIPOLYGON geometry typesx_var and y_var variables are requiredsf object as a boundary or administrative boundaries to be added to the map. An example New Zealand boundary (nz) has been provided with the package.plotly::ggplotly.ggplot_sf(example_sf_point,
boundary = nz,
size = 0.25,
title = "Site trends, 2008\u201317",
title_wrap = 40)pal <- c("#4575B4", "#D3D3D3", "#D73027")
ggplot_sf_col(example_sf_point, trend_category,
boundary = nz,
size = 0.25,
pal = pal,
title = "Site trends, 2008\u201317",
title_wrap = 40)ggplot_sf_facet(example_sf_point, trend_category,
boundary = nz,
size = 0.25,
title = "Site trends, 2008\u201317")pal <- c("#4575B4", "#D3D3D3", "#D73027")
ggplot_sf_col_facet(example_sf_point, trend_category, trend_category,
boundary = nz,
size = 0.25,
pal = pal,
title = "Site trends, 1990\u201317")simplevis provides ggplot maps made for spatial temporal arrays (stars).
The following functions are available:
ggplot_sf_colggplot_sf_col_facetThese functions work in the same way as the ggplot sf map functions, but with the following key differences:
plotly::ggplotly.stars object. For, ggplot_sf_col, the stars object must have 2 dimensions x and y, and only 1 attribute layer. Required input. For, ggplot_sf_col_facet, the stars object must have 2 dimensions, x and y, and multiple named attribute layers with the usual convention of lower case and underscores. Use select, slice, c and splitto get the stars object into the appropriate format.ggplot_stars_col(example_stars,
col_method = "quantile", col_cuts = c(0, 0.05, 0.25, 0.5, 0.75, 0.95, 1),
title = "Site medians, 2013-2017",
title_wrap = 40,
legend_digits = 1)map_data1 <- example_stars %>% rlang::set_names("A")
map_data2 <- example_stars_2 %>% rlang::set_names("B")
map_data <- c(map_data1, map_data2)
ggplot_stars_col_facet(map_data,
col_method = "quantile", col_cuts = c(0, 0.05, 0.25, 0.5, 0.75, 0.95, 1),
title = "Site medians, 2013-2017")simplevis provides the following types of leaflet map:
sf) mapsstars) mapsThese work in the same way as the ggplot map functions, but with no boundary arguments.
Outputs are hidden to keep the size of the vignette manageable.
simplevis provides two template shiny apps called template1 and template2. Users can access these functions by using the run_template functions for the applicable app, and then clicking on the download_code button to access a zip file of the code.
run_template("template1") # a graph and table
run_template("template2") # a leaflet map, as well as graph and tableFor a simple app, the basic method to create an app is:
run_template("template1") or run_template("template2") and download the code to use as a templateget_data.R, extract, process and save your data into the data subfolder, including a zip file for downloadmake_app_vis.R, draft your visualisations with dummy character inputsglobal.R, read your data in, and create any vectors requiredui.R, add a app titleui.R. add radioButtons and other widgetsserver.R, add code within reactive plot_data and plot components, change any dummy character inputs to shiny user inputs. Add a isMobile = input$isMobile specification to any simplevis graphs if you are looking to support mobile users as well as desktopserver.R, add code for map and table components, as applicablewww/About.Rmd, update as necessaryGTM-XXXXXXX with it in the www/js/tag-manager-js file.Iframing apps can provide a great experience for users.
Template apps are build to be compatible with one of two approaches to iframing: