I am using data.table to do some repeated lookups on a large dataset (45M rows, 4 int columns).
Here is what I want to do.
library(data.table) # generate some data, u's can show up in multiple s's d1 <- data.table(u=rep(1:500,2), s=round(runif(1000,1,100),0)) setkey(d1, u, s) # for each u, I want to lookup all their s's us <- d1[J(u=1), "s", with=F] # for each of the s's in the above data.table, # I want to lookup other u's from the parent data.table d1 # DOESN'T WORK: otherus <- d1[J(s = us), "u", with=F] # THIS WORKS but takes a really long time on my large dataset: otherus <- merge(d1, us, by='s')
Merge works for my purpose but since my 'd1' >>> 'us', it takes a long time. At first I thought maybe I am using the merge from the base, but based on the docs it does look like data.table merge is dispatched is the class(first_arg to merge) is a data.table.
I am still getting used to data.table J() syntax. Is there a niftier way to accomplish this?
Thanks in advance.