I am extremely impressed with how much improvement in speed I get for
tapply-like operations using
data.table compared to data frames.
df = data.frame(class = round(runif(1e6,1,1000)), x=rnorm(1e6)) DT = data.table(df) # takes ages if somefun is complex res1 = tapply(df$x, df$class, somefun) # takes much faster setkey(DT, class) res2 = DT[,somefun(x),by=class]
However, I didn't quite manage to get it to work noticeably faster than data frames in
apply-like operations (i.e., cases, in which a function needs to be applied to each row).
df = data.frame(x1 = rnorm(1e6), x2=rnorm(1e6)) DT = data.table(df) # takes ages if somefun is complex res1 = apply(df, 1, somefun) # not much improvement, if at all DT[,rowid:=.I] # or: DT$rowid = 1:nrow(DT) setkey(DT, rowid) res2 = DT[,somefun1(x1,x2),by=rowid]
Is this really just to be expected or there are some tricks?