I have a function that processes a number of different data frames, using `dplyr, like this:

some_function <- function(some_data){

    processed_data = some_data %>%
        group_by(session_id) %>% 
        arrange(some_date) %>% 
        mutate(n = row_number()) %>%
        filter(n == 1) %>%

The data frames passed to the function each share a few key column names but the others differ. In this function, I'm generally just dealing with shared column names, so it is simple to refer to them.

The exception is wanting to arrange() by some variable that differs systematically across data frames. e.g. it might be a column that is named a_date in one data frame but b_date in another.

So I want to operate on the column name that ends with _date. There are ways to operate with string representations of entire column names, but it is trickier to use some sort of matching. The select() function in dplyr has the ability to select columns using functions like ends_with() and so on. But how can this be achieved within other dplyr verbs, such as arrange()?


You can use the scoped verb arrange_at; for your case, use arrange_at with vars + select helper functions, %>% arrange_at(vars(ends_with('_date'))).


df <- data.frame(a_date = c(3,1,4,4), b_date = c(1,3,4,2))

Arrange on column a_date:

arrange_at(df, vars(starts_with('a')))
#  a_date b_date
#1      1      3
#2      3      1
#3      4      4
#4      4      2

Arrange on column b_date:

arrange_at(df, vars(starts_with('b')))
#  a_date b_date
#1      3      1
#2      4      2
#3      1      3
#4      4      4

Arrange on column a_date then b_date:

arrange_at(df, vars(ends_with('date')))
#  a_date b_date
#1      1      3
#2      3      1
#3      4      2
#4      4      4

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