I have a keyed data.table,
x, and realize that I need to merge it using a different multicolumn key.
I want to avoid (i) setting and resetting
x's key and (ii) keeping track of copies of
x with different keys. Here's some sample data and my current approach:
require(data.table) options(datatable.verbose=TRUE) set.seed(1) n <- 10 m <- 2 samp <- function(n) sample(1:9,n,replace=T) x <- data.table(A = samp(n),B = samp(n),C = samp(n),key="A") y <- x[samp(m),list(B,C,D=samp(m))] # this works: x[,.SD,key="B,C"][y] # B C A D # 1: 7 6 6 5 # 2: 9 4 6 2
So that approach works, but I get the comment
...j is a named list. It's very inefficient...
The named list is
.SD. Is there a better or more standard way to do this?
It seems that using
.SD has no effect:
key(x[,,keyby="B,C"]) # A key(x[,,key="B,C"]) # A