# understanding optimisation messages on assignment by reference in a data.table

This is from an observation during my answering this question from @sds here.

First, let me switch on the trace messages for `data.table`:

``````options(datatable.verbose = TRUE)
dt <- data.table(a = c(rep(3, 5), rep(4, 5)), b=1:10, c=11:20, d=21:30, key="a")
``````

Now, suppose one wants to get the sum of all columns grouped by column `a`, then, we could do:

``````dt.out <- dt[, lapply(.SD, sum), by = a]
``````

Now, suppose I'd want to add also the number of entries that belong to each group to `dt.out`, then I normally assign it by reference as follows:

``````dt.out[, count := dt[, .N, by=a][, N]]
# or alternatively
dt.out[, count := dt[, .N, by=a][["N"]]]
``````

In this assignment by reference, one of the messages `data.table` produces is:

``````RHS for item 1 has been duplicated. Either NAMED vector or recycled list RHS.
``````

This is a message from a file in data.table's source directory `assign.C`. I dont want to paste the relevant snippet here as it's about 18 lines. If necessary, just leave a comment and I'll paste the code. `dt[, .N, by=a][["N"]]` just gives `[1] 5 5`. So, it's not a `named vector`. And I don't understand what this `recycled list` in RHS is..

But if I do:

``````dt.out[, `:=`(count = dt[, .N, by=a][, N])]
# or equivalently
dt.out[, `:=`(count = dt[, .N, by=a][["N"]])]
``````

Then, I get the message:

``````Direct plonk of unnamed RHS, no copy.
``````

As I understand this, the RHS has been duplicated in the first case, meaning it's making a copy (shallow/deep, this I don't know). If so, why is this happening?

Even if not, why the changes in assignment by reference between two internally? Any ideas?

To bring out the main underlying question that I had in my mind while writing this post (and seem to have forgotten!): Is it "less efficient" to assign as `dt.out[, count := dt[, .N, by=a][["N"]]]` (compared to the second way of doing it)?

-
Happy to answer but what's the questions in the S.O. sense? I'll answer the first part for now ... –  Matt Dowle Apr 22 '13 at 16:54
I'll edit the question to make sure that my question is, in addition to the ones here, is it inefficient to assign using `a := .`. –  Arun Apr 22 '13 at 17:04
At the top I'm fairly sure it should be `options(datatable.verbose=TRUE)`. There isn't a `datatable.warnings` option but nothing would complain that setting it was ineffective. –  Matt Dowle May 3 '13 at 10:17

Update: The expression,

``````DT[, c(..., lapply(.SD, .), ..., by=.]
``````

has been optimised internally in commit #1242 of v1.9.3 (FR #2722). Here's the entry from NEWS:

o Complex j-expressions of the form `DT[, c(..., lapply(.SD, fun)), by=grp]`are now optimised, as long as `.SD` is only present in the form `lapply(.SD, fun)`.

For ex: `DT[, c(.I, lapply(.SD, sum), mean(x), lapply(.SD, log)), by=grp]`
is optimised to: `DT[, list(.I, x=sum(x), y=sum(y), ..., mean(x), log(x), log(y), ...), by=grp]`

But `DT[, c(.SD, lapply(.SD, sum)), by=grp]` for example isn't optimised yet. This partially resolves `FR #2722`. Thanks to Sam Steingold for filing the FR.

Where it says `NAMED vector` it means that in the internal R sense at C level; i.e., whether an object has been assigned a symbol and is called something, not whether an atomic vector has a `"names"` attribute or not. The `NAMED` value in the SEXP structure takes value 0, 1 or 2. R uses that to know whether it needs to copy-on-subassign or not. See section 1.1.2 of R-ints.

What would be better is if optimization of `j` in `data.table` could handle :

``````DT[, c(lapply(.SD,sum),.N), by=a]
``````

That works but may be slow. Currently only the simpler form is optimized :

``````DT[, lapply(.SD,sum), by=a]
``````

To answer main question, yes the following :

``````Direct plonk of unnamed RHS, no copy.
``````

is desirable compared to :

``````RHS for item 1 has been duplicated. Either NAMED vector or recycled list RHS.
``````

Another way to achieve this is :

``````dt.out[, count := dt[, .N, by=a]\$N]
``````

I'm not quite sure why `[["N"]]` returns a `NAM(2)` compared to `\$N` which doesn't.

-
Thanks Matthew for your patience. Yes, I already benchmarked @djhurio's answer here (in the same post I've linked on top) and found it a tad slower. Sorry, I've not yet familiarised myself with the R-C integration. My question is basically between the two methods of assigning by reference: Do the different messages in each case have anything to do with efficiency (even though I understand that the answer may very well have much to do with reading section 1.1.2)? –  Arun Apr 22 '13 at 17:14
Thanks Matthew. Indeed it would be nice if `DT <- DT[, c(lapply(.SD,sum),.N), by=a]` were optimized because then I would be able to discard the old `DT` right away. –  sds Apr 23 '13 at 14:06
@sds Ok. Please could you file a feature request. Thanks. –  Matt Dowle Apr 23 '13 at 14:32
@MatthewDowle: r-forge.r-project.org/tracker/… –  sds Apr 23 '13 at 14:47
@sds Perfect, thanks. –  Matt Dowle Apr 23 '13 at 15:11