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Demo with mtcars

Load data

library(funkyheatmap)
library(dplyr, warn.conflicts = FALSE)
library(tibble, warn.conflicts = FALSE)
library(purrr, warn.conflicts = FALSE)

data("mtcars")

data <- mtcars %>%
  rownames_to_column("id") %>%
  arrange(desc(mpg)) %>%
  head(20) %>%
  mutate(type = c(rep("images/ice.png", 10), rep("images/electric.png", 10)))

We can plot this data frame without any additional formatting, though it doesn’t look very nice:

funky_heatmap(data)
#> ℹ No column info was provided, assuming all columns in `data` are to be plotted.
#> ℹ Column info did not contain column `name`, using `id` to generate it.
#> ℹ Column info did not contain information on which columns to plot, inferring from `data` types.
#> ℹ Column info did not contain group information, assuming columns are ungrouped.
#> ℹ Column info did not contain a column called 'palette', generating palettes based on the 'geom' column.
#> ℹ Column info did not contain a column called 'width', generating options based on the 'geom' column.
#> ℹ Column info did not contain a column called 'legend', generating options based on the 'geom' column.
#> ℹ No row info was provided, assuming all rows in `data` are to be plotted.
#> ℹ Row info did not contain group information, assuming rows are ungrouped.
#> ℹ No palettes were provided, trying to automatically assign palettes.
#> ℹ Palette named 'numerical_palette' was not defined. Assuming palette is numerical. Automatically selected palette 'Blues'.
#> ℹ No legends were provided, trying to automatically infer legends.
#> ℹ Some palettes were not used in the column info, adding legends for them.
#> ℹ Legend 1 did not contain a geom, inferring from the column info.
#> ℹ Legend 1 did not contain labels, inferring from the geom.
#> ℹ Legend 1 did not contain size, inferring from the labels.
#> ℹ Legend 1 did not contain color, inferring from the palette.

By defining a few additional formatting parameters, we can get the plot to look much nicer.

Column info

column_info <- tribble(
  ~id,     ~group,         ~name,                      ~geom,        ~palette,    ~options,
  "id",    NA,             "",                         "text",       NA,          list(hjust = 0, width = 6),
  "mpg",   "overall",      "Miles / gallon",           "bar",        "palette1",  list(width = 4, legend = FALSE),
  "cyl",   "overall",      "Number of cylinders",      "bar",        "palette2",  list(width = 4, legend = FALSE),
  "disp",  "group1",       "Displacement (cu.in.)",    "funkyrect",  "palette1",  lst(),
  "hp",    "group1",       "Gross horsepower",         "funkyrect",  "palette1",  lst(),
  "drat",  "group1",       "Rear axle ratio",          "funkyrect",  "palette1",  lst(),
  "wt",    "group1",       "Weight (1000 lbs)",        "funkyrect",  "palette1",  lst(),
  "qsec",  "group2",       "1/4 mile time",            "circle",     "palette2",  lst(),
  "vs",    "group2",       "Engine",                   "circle",     "palette2",  lst(),
  "am",    "group2",       "Transmission",             "circle",     "palette2",  lst(),
  "gear",  "group2",       "# Forward gears",          "circle",     "palette2",  lst(),
  "carb",  "group2",       "# Carburetors",            "circle",     "palette2",  lst(),
  "type",  "group2",       "Type of engine",           "image",      NA,          lst()
)

Define column groups

column_groups <- tribble( # tribble_start
  ~Category,  ~group,         ~palette,
  "Overall",  "overall",      "overall",
  "Group 1",  "group1",       "palette1",
  "Group 2",  "group2",       "palette2"
) # tribble_end

Row info

Determine method grouping

row_info <- data %>% transmute(id, group = "test")
row_groups <- tibble(Group = "Test", group = "test")

Palettes

Determine palettes

palettes <- tribble(
  ~palette,             ~colours,
  "overall",            grDevices::colorRampPalette(rev(RColorBrewer::brewer.pal(9, "Greys")[-1]))(101),
  "palette1",           grDevices::colorRampPalette(rev(RColorBrewer::brewer.pal(9, "Blues") %>% c("#011636")))(101),
  "palette2",           grDevices::colorRampPalette(rev(RColorBrewer::brewer.pal(9, "Reds")[-8:-9]))(101)
)

Funky heatmap

Generate funky heatmap

g <- funky_heatmap(
  data = data,
  column_info = column_info,
  column_groups = column_groups,
  row_info = row_info,
  row_groups = row_groups,
  palettes = palettes,
  position_args = position_arguments(expand_xmax = 4)
)
#> ℹ No legends were provided, trying to automatically infer legends.
#> ℹ Some palettes were not used in the column info, adding legends for them.
#> ℹ Legend 1 did not contain a geom, inferring from the column info.
#> ! Legend 1 has geom 'bar', which is not yet implemented. Disabling for now.
#> ℹ Legend 2 did not contain a geom, inferring from the column info.
#> ! Legend 2 has geom 'bar', which is not yet implemented. Disabling for now.
g

funkyheatmap automatically recommends a width and height for the generated plot. To save your plot, run:

ggsave("path_to_plot.pdf", g, device = cairo_pdf, width = g$width, height = g$height)

These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.