data.table objects now have a := operator. What makes this operator different from all other assignment operators? Also, what are its uses, how much faster is it, and when should it be avoided?
Here is an example showing 10 minutes reduced to 1 second (from NEWS on homepage). It's like subassigning to a
data.frame but doesn't copy the entire table each time.
m = matrix(1,nrow=100000,ncol=100) DF = as.data.frame(m) DT = as.data.table(m) system.time(for (i in 1:1000) DF[i,1] <- i) user system elapsed 287.062 302.627 591.984 system.time(for (i in 1:1000) DT[i,V1:=i]) user system elapsed 1.148 0.000 1.158 ( 511 times faster )
j like that allows more idioms :
DT["a",done:=TRUE] # binary search for group 'a' and set a flag DT[,newcol:=42] # add a new column by reference (no copy of existing data) DT[,col:=NULL] # remove a column by reference
DT[,newcol:=sum(v),by=group] # like a fast transform() by group
I can't think of any reasons to avoid
:= ! Other than, inside a
for loop. Since
:= appears inside
DT[...], it comes with the small overhead of the
[.data.table method; e.g., S3 dispatch and checking for the presence and type of arguments such as
nomatch etc. So for inside
for loops, there is a low overhead, direct version of
?set for more details and examples. The disadvantages of
set include that
i must be row numbers (no binary search) and you can't combine it with
by. By making those restrictions
set can reduce the overhead dramatically.
system.time(for (i in 1:1000) set(DT,i,"V1",i)) user system elapsed 0.016 0.000 0.018