Suppose I've got the following two data tables :
dt1 <- data.table(id=1:3,val1=c("a","a","b"),key="id") # id val1 # 1: 1 a # 2: 2 a # 3: 3 b dt2 <- data.table(id=c(1:3,1:2),val2=10:14,key="id") # id val2 # 1: 1 10 # 2: 1 13 # 3: 2 11 # 4: 2 14 # 5: 3 12
Let's say that
dt1 is a list of people identified by their
dt2 a list of observations on these same people, with the correspondent
Now, I'd like to compute the mean of
val2 for each group of
val1. I've understood that I can do it the following way :
dt1[dt2][,mean(val2),by=val1] # val1 V1 # 1: a 12 # 2: b 12
But I've also read in the FAQ (section 1.14) that it's not efficient (at least for very large data tables).
So, is there a better, more efficient way to do it ?
EDIT : Another related question : I just saw that the following two lines will give the same result :
Are they equivalent or is there a difference between the two ?