I have a data frame that contains multiple rows and multiple columns.
I have a character vector that contains the names of some of the columns in the data frame. The number of columns can vary.
For each line, for each of these columns, I have to identify if one of them is not NA. (basically
any(!is.na(df[namecolumns])) for each line), to then do a subset for the ones that are
any(!is.na(df[1,][namescolumns])) works well, but it's only for the first line.
I could easily do a for loop, which is my first reflex as a programmer and because it works for the first line, but I'm sure it's not the
R way and that there is a way to do this with an
tapply or other), but I can't figure out which one and how.