I am a beginner trying to use dplyr for do data analysis. My data basically are from a few Operations ("Ops") and are well ordered. I often need to apply different functions to the observations("Num") according to the type of Operations, then combine them for analysis.
Trivial example is below:
X Num Ops 0 37 S 1 18 R 2 11 S 3 3 R 4 11 S 5 13 R ... ... ...
I want to add a new column "Num2", according to the values column "Ops", e.g.:
df %〉% mutate(Num2=ifelse(Ops="S",Num-1, Num+1))
I am not sure if I should do a lot of
ifelse assignments -- it feels redundant and inefficient.
There must be a much better solution, maybe using some combinations of "group_by, select, filter". Any suggestions?
Basically I want to figure out if there is a way to group the data according to certain criteria, then apply different functions to different subsets, and finally merge the results back together. Typical dplyr examples I found apply the same function(s) to all subsets.
@eddi below provided a more general solution using data.table. Is there a dplyr equivalent?