Quoting mainly from ggplot2 book, p. 148f., online version: https://ggplot2-book.org/facet.html

There are three types of facetting:

`facet_null()`

: a single plot, the default.
`facet_wrap()`

: "wraps" a 1d ribbon of panels into 2d.
`facet_grid()`

: produces a 2d grid of panels defined by variables which form
the rows and columns.

**Facet wrap**

`facet_wrap()`

makes a long ribbon of panels (generated by any number of
variables) and wraps it into 2d. This is useful if you have a single variable
with many levels and want to arrange the plots in a more space efficient
manner.

You can control how the ribbon is wrapped into a grid with `ncol`

, `nrow`

,
`as.table`

and `dir`

. `ncol`

and `nrow`

control how many columns and rows (you only need to set one). `as.table`

controls whether the facets are laid out like
a table (`TRUE`

), with highest values at the bottom-right, or a plot (`FALSE`

),
with the highest values at the top-right. `dir`

controls the direction of wrap:
**h**orizontal or **v**ertical.

**Facet grid**

From `?facet_grid`

: `facet_grid()`

forms a matrix of panels defined by row and column faceting variables. It is most useful when you have two discrete variables, and all combinations of the variables exist in the data.

You can use multiple variables in the rows or columns, by "adding" them
together, e.g. `a + b ~ c + d`

.

`facet grid()`

has an additional parameter called `space`

, which takes the
same values as `scales`

.

```
# If scales and space are free, then the mapping between position
# and values in the data will be the same across all panels. This
# is particularly useful for categorical axes
ggplot(subset(mpg, manufacturer %in% c("audi", "honda", "toyota")) , aes(drv, model)) +
geom_point() +
facet_grid(manufacturer ~ ., scales = "free", space = "free") +
theme(strip.text.y = element_text(angle = 0))
```

( simplified ) Example taken from `?facet_grid`