dplyr is fast and I would like to use the %.% piping a lot. I want to use a table function (count by frequency) and preserve column name and have output be data.frame.
How can I achieve the same as the code below using only dplyr functions (imagine huge data.table (BIGiris) with 6M rows)
> out<-as.data.frame(table(iris$Species)) > names(out)<-'Species' > names(out)<-'my_cnt1' > out
output is this. Notice that I have to rename back column 1. Also, in dplyr mutate or other call - I would like to specify name for my new count column somehow.
Species my_cnt1 1 setosa 50 2 versicolor 50 3 virginica 50
imagine joining to a table like this (assume iris data.frame has 6M rows) and species is more like "species_ID"
final join and output (for joining, I need to preserve column names all the time)
> left_join(out,habitat) Joining by: "Species" Species my_cnt1 lives_in 1 setosa 50 sea 2 versicolor 50 <NA> 3 virginica 50 <NA> >