ir object into multiple columns with a regular expression or numeric locationsSeparate a character column in an ir object into multiple columns with a regular expression or numeric locations
separate.ir(
data,
col,
into,
sep = "[^[:alnum:]]+",
remove = TRUE,
convert = FALSE,
extra = "warn",
fill = "warn",
...
).data with separated columns. If the spectra column is
dropped or invalidated (see ir_new_ir()), the ir class is dropped, else
the object is of class ir.
An object of class ir.
<tidy-select> Column to expand.
Names of new variables to create as character vector.
Use NA to omit the variable in the output.
Separator between columns.
If character, sep is interpreted as a regular expression. The default
value is a regular expression that matches any sequence of
non-alphanumeric values.
If numeric, sep is interpreted as character positions to split at. Positive
values start at 1 at the far-left of the string; negative value start at -1 at
the far-right of the string. The length of sep should be one less than
into.
If TRUE, remove input column from output data frame.
If TRUE, will run type.convert() with
as.is = TRUE on new columns. This is useful if the component
columns are integer, numeric or logical.
NB: this will cause string "NA"s to be converted to NAs.
If sep is a character vector, this controls what
happens when there are too many pieces. There are three valid options:
"warn" (the default): emit a warning and drop extra values.
"drop": drop any extra values without a warning.
"merge": only splits at most length(into) times
If sep is a character vector, this controls what
happens when there are not enough pieces. There are three valid options:
"warn" (the default): emit a warning and fill from the right
"right": fill with missing values on the right
"left": fill with missing values on the left
Additional arguments passed on to methods.
Other tidyverse:
arrange.ir(),
distinct.ir(),
extract.ir(),
filter-joins,
filter.ir(),
group_by,
mutate,
mutate-joins,
nest,
pivot_longer.ir(),
pivot_wider.ir(),
rename,
rowwise.ir(),
select.ir(),
separate_rows.ir(),
slice,
summarize,
unite.ir()
## separate
ir_sample_data |>
tidyr::separate(
col = "id_sample", c("a", "b", "c")
)
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