The objective of this vignette is to show how to quickly build data visualizations with the ApexCharts JavaScript library, as well as to give an overview of the different graphics available.
Data used are from ggplot2 package.
Simple bar charts can be created with:
Flipping coordinates can be done by using
type = "bar":
To create a dodge bar charts, use aesthetic fill :
For stacked bar charts, specify option stacked in
ax_chart :
Simple line charts can be created with (works with
character, Date or POSIXct):
To represent several lines, use a data.frame in long
format and the group aesthetic:
Create area charts with type = "area":
data("eco2mix", package = "apexcharter")
apex(eco2mix, aes(datetime, production, fill = source), type = "area") %>%
ax_chart(animations = list(enabled = FALSE), stacked = TRUE) %>%
ax_stroke(width = 1) %>%
ax_fill(opacity = 1, type = "solid") %>%
ax_tooltip(x = list(format = "dd MMM, HH:mm")) %>%
ax_yaxis(labels = list(formatter = format_num("~", suffix = "MW"))) %>%
ax_colors_manual(
list(
"bioenergies" = "#156956",
"fuel" = "#80549f",
"coal" = "#a68832",
"solar" = "#d66b0d",
"gas" = "#f20809",
"wind" = "#72cbb7",
"hydraulic" = "#2672b0",
"nuclear" = "#e4a701",
"pumping" = "#0e4269"
)
) %>%
ax_labs(
title = "Electricity generation by sector in France",
subtitle = "Data from \u00e9CO\u2082mix"
)You can create ribbon charts using ymin and
ymax aesthetics :
data("temperatures", package = "apexcharter")
apex(
temperatures,
aes(x = date, ymin = low, ymax = high),
type = "rangeArea",
serie_name = "Low/High (2018-2021)"
) %>%
add_line(aes(date, `2023`)) %>%
ax_chart(animations = list(enabled = FALSE)) %>%
ax_yaxis(tickAmount = 7, labels = list(formatter = format_num("~", suffix = "°C"))) %>%
ax_colors(c("#8485854D", "#FF0000")) %>%
ax_stroke(width = c(1, 2)) %>%
ax_fill(opacity = 1, type = "solid") %>%
ax_labs(
title = "Temperatures in 2023 with range from 2018 to 2021",
subtitle = "Data from ENEDIS"
)Simple bar charts can be created with:
Color points according to a third variable:
And change point size using z aesthetics:
Simple pie charts can be created with:
poll <- data.frame(
answer = c("Yes", "No"),
n = c(254, 238)
)
apex(data = poll, type = "pie", mapping = aes(x = answer, y = n))It’s also possible to make donut chart:
Simple radial charts can be created with (here we pass values
directly in aes, but you can use a data.frame)
:
Multi radial chart (more than one value):
Simple radar charts can be created with:
mtcars$model <- rownames(mtcars)
apex(data = head(mtcars), type = "radar", mapping = aes(x = model, y = qsec))With a grouping variable:
# extremely complicated reshaping
new_mtcars <- reshape(
data = head(mtcars),
idvar = "model",
varying = list(c("drat", "wt")),
times = c("drat", "wt"),
direction = "long",
v.names = "value",
drop = c("mpg", "cyl", "hp", "dist", "qsec", "vs", "am", "gear", "carb")
)
apex(data = new_mtcars, type = "radar", mapping = aes(x = model, y = value, group = time))With some custom options for color mapping:
Create a heatmap with :
Create a treemap with:
Create a candlestick chart with:
Create boxplot (without outliers for now) with:
data("mpg", package = "ggplot2")
apex(mpg, aes(hwy, class), "boxplot") %>%
ax_plotOptions(
boxPlot = boxplot_opts(color.upper = "#8BB0A6", color.lower = "#8BB0A6" )
) %>%
ax_stroke(colors = list("#2A5769")) %>%
ax_grid(
xaxis = list(lines = list(show = TRUE)),
yaxis = list(lines = list(show = FALSE))
)Create Dumbbell chart with:
data("life_expec", package = "apexcharter")
apex(life_expec, aes(country, x = `1972`, xend = `2007`), type = "dumbbell") %>%
ax_plotOptions(
bar = bar_opts(
dumbbellColors = list(list("#3d85c6", "#fb6003"))
)
) %>%
ax_colors("#BABABA") %>%
ax_labs(
title = "Life expectancy : 1972 vs. 2007",
subtitle = "Data from Gapminder dataset",
x = "Life expectancy at birth, in years"
)