I recently built off of @agile bean's answer (using rename_with
, formerly rename_at
) to build a function which changes column names if they exist in the data frame, such that one can make the column names of heterogeneous data frames match each other when applicable.
The looping can surely be improved, but figured I'd share for posterity.
create example data frame:
x= structure(list(observation_date = structure(c(18526L, 18784L,
17601L), class = c("IDate", "Date")), year = c(2020L, 2021L,
2018L)), sf_column = "geometry", agr = structure(c(id = NA_integer_,
common_name = NA_integer_, scientific_name = NA_integer_, observation_count = NA_integer_,
country = NA_integer_, country_code = NA_integer_, state = NA_integer_,
state_code = NA_integer_, county = NA_integer_, county_code = NA_integer_,
observation_date = NA_integer_, time_observations_started = NA_integer_,
observer_id = NA_integer_, sampling_event_identifier = NA_integer_,
protocol_type = NA_integer_, protocol_code = NA_integer_, duration_minutes = NA_integer_,
effort_distance_km = NA_integer_, effort_area_ha = NA_integer_,
number_observers = NA_integer_, all_species_reported = NA_integer_,
group_identifier = NA_integer_, year = NA_integer_, checklist_id = NA_integer_,
yday = NA_integer_), class = "factor", .Label = c("constant",
"aggregate", "identity")), row.names = c("3", "3.1", "3.2"), class = "data.frame")
function
match_col_names <- function(x){
col_names <- list(date = c("observation_date", "date"),
C = c("observation_count", "count","routetotal"),
yday = c("dayofyear"),
latitude = c("lat"),
longitude = c("lon","long")
)
for(i in seq_along(col_names)){
newname=names(col_names)[i]
oldnames=col_names[[i]]
toreplace = names(x)[which(names(x) %in% oldnames)]
x <- x %>%
rename_with(~newname, toreplace)
}
return(x)
}
apply function
x <- match_col_names(x)