rows_add {gt} | R Documentation |
Add one or more rows to a gt table
Description
It's possible to add new rows to your table with rows_add()
by supplying
the new row data through name-value pairs or two-sided formula expressions.
The new rows are added to the bottom of the table by default but can be added
internally by using either the .before
or .after
arguments. If entirely
empty rows need to be added, the .n_empty
option provides a means to
specify the number of blank (i.e., all NA
) rows to be inserted into the
table.
Usage
rows_add(
.data,
...,
.list = list2(...),
.before = NULL,
.after = NULL,
.n_empty = NULL
)
Arguments
.data |
The gt table data object
This is the gt table object that is commonly created through use of the
|
... |
Cell data assignments
Expressions for the assignment of cell values to the new rows by column
name in |
.list |
Alternative to
Allows for the use of a list as an input alternative to |
.before , .after |
Row used as anchor
A single row-resolving expression or row index an be given to either
|
.n_empty |
Number of empty rows to add
An option to add empty rows in lieu of rows containing data that would
otherwise be supplied to |
Value
An object of class gt_tbl
.
Targeting the row for insertion with .before
or .after
The targeting of a row for insertion is done through the .before
or
.after
arguments (only one of these options should be be used). This can be
done in a variety of ways. If a stub is present, then we potentially have row
identifiers. This is the ideal method to use for establishing a row target.
We can use tidyselect-style expressions to target a row. It's also
possible to use row indices (e.g., c(3, 5, 6)
) though these index values
must correspond to the row numbers of the input data (the indices won't
necessarily match those of rearranged rows if row groups are present). One
more type of expression is possible, an expression that takes column values
(can involve any of the available columns in the table) and returns a logical
vector.
Examples
Let's make a simple gt table with the exibble
dataset, using the
row
column for labels in the stub. We'll add a single row to the bottom of
the table with rows_add()
. With name-value pairs, it's possible to add
values for the new body cells that correspond to columns available in the
table. For any columns that are missed, the related body cells will receive
NA
values.
exibble |> gt(rowname_col = "row") |> rows_add( row = "row_9", num = 9.999E7, char = "ilama", fctr = "nine", group = "grp_b" )
If you wanted to place a row somewhere in the middle of the table, we can use
either of the .before
or .after
arguments in rows_add()
:
exibble |> gt(rowname_col = "row") |> rows_add( row = "row_4.5", num = 9.923E3, char = "elderberry", fctr = "eighty", group = "grp_a", .after = "row_4" )
Putting a row at the beginning requires the use of the .before
argument. We
can use an index value for the row as in .before = 1
for maximum easiness:
exibble |> gt(rowname_col = "row") |> rows_add( row = "row_0", num = 0, char = "apple", fctr = "zero", group = "grp_a", .before = 1 )
Again with exibble
, we can create an example where we insert 'spacer'
rows. These are rows without any content and merely serve to add extra
vertical space to the table in specific locations. In this case, we'll have a
stub with row names and row groups (set up in the gt()
call). The two rows
being added will occupy the bottom row of each group. The only data defined
for the two rows involves values for the row
and group
columns. It's
important that the data for group
uses the group names already present in
the data ("grp_a"
and "grp_b"
). The corresponding values for row
will
be "row_a_end"
and "row_b_end"
, these will be used later expressions for
targeting the rows. Here's the code needed to generate spacer rows at the end
of each row group:
exibble |> gt(rowname_col = "row", groupname_col = "group") |> rows_add( row = c("row_a_end", "row_b_end"), group = c("grp_a", "grp_b") ) |> tab_style( style = cell_borders(sides = "top", style = "hidden"), locations = list( cells_body(rows = ends_with("end")), cells_stub(rows = ends_with("end")) ) ) |> sub_missing(missing_text = "") |> text_case_when( grepl("end", x) ~ "", .locations = cells_stub() ) |> opt_vertical_padding(scale = 0.5)
All missing values were substituted with an empty string (""
), and that was
done by using sub_missing()
. We removed the top border of the
new rows with a call to tab_style()
, targeting those rows where the row
labels end with "end"
. Finally, we get rid of the row labels with the use
of text_case_when()
, using a similar strategy of targeting the
name of the row label.
Another application is starting from nothing (really just the definition of
columns) and building up a table using several invocations of rows_add()
.
This might be useful in interactive or programmatic applications. Here's an
example where two columns are defined with dplyr::tibble()
(and no rows are present initially); with two calls of rows_add()
, two
separate rows are added.
dplyr::tibble( time = lubridate::POSIXct(), event = character(0L) ) |> gt() |> rows_add( time = lubridate::ymd_hms("2022-01-23 12:36:10"), event = "start" ) |> rows_add( time = lubridate::ymd_hms("2022-01-23 13:41:26"), event = "completed" )
It's possible to use formula syntax in rows_add()
to perform column
resolution along with attaching values for new rows. If we wanted to use an
equivalent value for multiple cells in a new row, a valid input would be in
the form of <expr> ~ <value vector>
. In the following example, we create a
simple table with six columns (the rendered gt table displays four
columns and a stub column since the group
column is used for row group
labels). Let's add a single row where some of the cell values added
correspond to columns are resolved on the LHS of the formula expressions:
dplyr::tibble( group = c("Group A", "Group B", "Group B"), id = c("WG-025360", "WG-025361", "WG-025362"), a = c(1, 6, 2), b = c(2, 6, 2), quantity_x = c(83.58, 282.71, 92.20), quantity_y = c(36.82, 282.71, 87.34) ) |> gt(rowname_col = "id", groupname_col = "group") |> rows_add( starts_with("gr") ~ "Group A", id = "WG-025363", c(a, b) ~ 5, starts_with("quantity") ~ 72.63 )
We can see that using starts_with("gr")
yields a successful match to the
group
column with the tangible result being an addition of a row to the
"Group A"
group (the added row is the second one in the rendered gt
table). Through the use of c(a, b)
, it was possible to add the value 5
to
both the a
and b
columns. A similar approach was taken with adding the
72.63
value to the quantity_x
and quantity_y
columns though we used the
starts_with("quantity")
expression to get gt to resolve those two
columns.
You can start with an empty table (i.e., no columns and no rows) and add one
or more rows to it. In the completely empty table scenario, where you would
use something like dplyr::tibble()
or data.frame()
with gt()
, the first
rows_add()
could have rows of arbitrary width. In other words, you get to
generate table columns (and rows) with a completely empty table via
rows_add()
. Here's an example of that:
gt(dplyr::tibble()) |> rows_add( msrp = c(29.95, 49.95, 79.95), item = c("Klax", "Rez", "Ys"), type = c("A", "B", "X") ) |> rows_add( msrp = 14.95, item = "D", type = "Z" )
In the above, three columns and three rows were generated. The second usage
of rows_add()
had to use of a subset of those columns (all three were used
to create a complete, new row).
We can also start with a virtually empty table: one that has columns but no
actual rows. With this type of multi-column, zero-row table, one needs to use
a subset of the columns when generating new rows through rows_add()
.
dplyr::tibble( msrp = numeric(0L), item = character(0L), type = character(0L) ) |> gt() |> rows_add( msrp = c(29.95, 49.95, 79.95, 14.95), item = c("Klax", "Rez", "Ys", "D"), type = c("A", "B", "X", "Z") ) |> cols_add( genre = c("puzzle", "action", "RPG", "adventure") ) |> fmt_currency() |> cols_move_to_end(columns = msrp)
Function ID
6-4
Function Introduced
v0.10.0
(October 7, 2023)
See Also
Other row addition/modification functions:
grand_summary_rows()
,
row_group_order()
,
summary_rows()