# Apply function on a subset of columns (.SDcols) whilst applying a different function on another column (within groups)

This is very similar to a question applying a common function to multiple columns of a `data.table` uning `.SDcols` answered thoroughly here.

The difference is that I would like to simultaneously apply a different function on another column which is not part of the `.SD` subset. I post a simple example below to show my attempt to solve the problem:

``````dt = data.table(grp = sample(letters[1:3],100, replace = TRUE),
v1 = rnorm(100),
v2 = rnorm(100),
v3 = rnorm(100))
sd.cols = c("v2", "v3")
dt.out = dt[, list(v1 = sum(v1),  lapply(.SD,mean)), by = grp, .SDcols = sd.cols]
``````

Yields the following error:

``````Error in `[.data.table`(dt, , list(v1 = sum(v1), lapply(.SD, mean)), by = grp,
: object 'v1' not found
``````

Now this makes sense because the `v1` column is not included in the subset of columns which must be evaluated first. So I explored further by including it in my subset of columns:

``````sd.cols = c("v1","v2", "v3")
dt.out = dt[, list(sum(v1), lapply(.SD,mean)), by = grp, .SDcols = sd.cols]
``````

Now this does not cause an error but it provides an answer containing 9 rows (for 3 groups), with the sum repeated thrice in column `V1` and the means for all 3 columns (as expected but not wanted) placed in `V2` as shown below:

``````> dt.out
grp        V1                  V2
1:   c -1.070608 -0.0486639841313638
2:   c -1.070608  -0.178154270921521
3:   c -1.070608  -0.137625003604012
4:   b -2.782252 -0.0794929150464099
5:   b -2.782252  -0.149529237116445
6:   b -2.782252   0.199925178109264
7:   a  6.091355   0.141659419355985
8:   a  6.091355 -0.0272192037753071
9:   a  6.091355 0.00815760216214876
``````

Workaround Solution using 2 steps

Clearly it is possible to solve the problem in multiple steps by calculating the `mean` by group for the subset of columns and joining it to the `sum` by group for the single column as follows:

``````dt.out1 = dt[, sum(v1), by = grp]
dt.out2 = dt[, lapply(.SD,mean), by = grp, .SDcols = sd.cols]
dt.out = merge(dt.out1, dt.out2, by = "grp")

> dt.out
grp        V1         v2           v3
1:   a  6.091355 -0.0272192  0.008157602
2:   b -2.782252 -0.1495292  0.199925178
3:   c -1.070608 -0.1781543 -0.137625004
``````

Im sure it's a fairly simple thing I am missing, thanks in advance for any guidance.

-
the fact that the first expression doesn't work is a bug imo, so please submit a bug report –  eddi Dec 9 '13 at 16:09
@eddi you want me to log this on R-Forge? –  Matt Weller Dec 12 '13 at 0:00
yes, please. thanks! –  eddi Dec 12 '13 at 4:22
@eddi reported but I don't think my description is very good at all as I'm not exactly sure which part you think is the bug. I linked to this thread, I hope the development team can fathom it. Link to the bug report: r-forge.r-project.org/tracker/… –  Matt Weller Dec 20 '13 at 20:51

## 2 Answers

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.

### Update of timings for the data shown below:

``````# updated timings with v1.9.2
dt <- data.table(x=rep(1:1e6, each=10), y=sample(10), z=sample(2))
system.time(dt[, lapply(.SD, mean), by=x]) # uses GForce
#   user  system elapsed
#  0.307   0.059   0.375
system.time(dt[, c(bla = sum(y), lapply(.SD, mean)), by=x])
#   user  system elapsed
#  0.363   0.123   0.500
``````

You got the first point right that you can not access `v1` when you set .SDcols to be `c('v2', 'v3')`.

As for the second point not returning the the output as you expect, you should use `c` instead of `list` because `lapply(.SD, mean)` already returns a list.

``````sd.cols = c("v1","v2", "v3")
dt.out = dt[, c(sum(v1), lapply(.SD,mean)), by = grp, .SDcols = sd.cols]
``````

However, `lapply(.SD, mean)` alone in `j` is optimised. Meaning, when you write:

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

Internally, it's replaced with the respective columns to resemble something like:

``````DT[, list(x=..., y=..., z=...), by=...]
``````

This is because, grouping is implemented in C and for each group, the corresponding data is put together and evaluated for the 'j' expression. And evaluating `.SD` seems a costly operation and therefore becomes slow. However, when you do:

``````DT[, c(vv=sum(v1), lapply(.SD, mean)), by=..]
``````

This'll once again be slow, because, the expression with .SD internally will not be identified in this case (yet) and be replaced with the individual columns. This is also a feature request and should be implemented sometime soon.

Until this FR is implemented, you could work around things with either spelling out the columns by yourself or computing all functions on all columns (if it's not costly) or do it more than once (as you seem to have done).

### This is outdated. Please see the update at the top of this post.

Eddi, yes and no. nice catch.

``````# updated timings with v1.9.2
dt <- data.table(x=rep(1:1e6, each=10), y=sample(10), z=sample(2))
system.time(dt[, lapply(.SD, mean), by=x]) # uses GForce
#   user  system elapsed
#  0.305   0.056   0.370
system.time(dt[, c(bla = sum(y), lapply(.SD, mean)), by=x])
#   user  system elapsed
# 67.697   1.755  69.596
``````

The "no" part is that "Cdogroups" is the time consuming part (using `debugonce`) and I still think the evaluation step is the costly part (the only place it leaves C). The "yes" part is that it is not calling `[.data.table`.

Probably `lapply(.SD, mean)` evaluation takes time to evaluate compared to list(...)? I'll have to check this out (later), can't invest more time at the moment.

-
Arun, I don't think the `.SD` bottleneck applies in this case - the normal `.SD` bottleneck has to do with the overhead of `[.data.table`, which is absent here. –  eddi Dec 9 '13 at 16:13
@eddi, made and edit with my observations, any thoughts? –  Arun Dec 9 '13 at 18:17
you're right, it is slower and I don't really understand why atm - I think this means that there is another large-overhead computation somewhere else (or put differently - I doubt that the bottleneck is calling eval from Cdogroups) –  eddi Dec 9 '13 at 18:34
It's `eval` of `lapply` many times that is slow, not `.SD`. Look at the source of `base::lapply` at C level. It does it by constructing a `list(...)` call and then evaling that, anyway. When `lapply` is looped, that same construction is done over and over, wastefully. So the optimization is to make that construction up front once (and at R level will do inside `[.data.table`) and then pass that to `dogroups`. But only a straightforward single call to `lapply` is optimized currently. Combined with `c()` isn't picked up. cc @eddi –  Matt Dowle Jan 9 at 19:56
@MattDowle Hm, right and on point! just tried `system.time(dt[, c(bla = sum(y), lapply(1:5, mean)), by=x])` takes half of what it takes with `.SD` instead already! Seems that `lapply` is the culprit here.. –  Arun Jan 9 at 20:02

Try this:

``````dt[,list(sum(v1), mean(v2), mean(v3)), by=grp]
``````

In `data.table`, using `list()` in the second argument allows you to describe a set of columns that result in the final `data.table`.

For what it's worth, `.SD` can be quite slow [^1] so you may want to avoid it unless you truly need all of the data supplied in the subsetted `data.table` like you might for a more sophisticated function.

Another option, if you have many columns for `.SDcols` would be to do the merge in one line using the `data.table` merge syntax.

For example:

``````dt[, sum(v1), by=grp][dt[,lapply(.SD,mean), by=grp, .SDcols=sd.cols]]
``````

In order to use the `merge` from `data.table`, you need to first use `setkey()` on your `data.table` so it knows how to match things up.

So really, first you need:

``````setkey(dt, grp)
``````

Then you can use the line above to produce an equivalent result.

[^1]: I find this to be especially true as your number of groups approach the number of total rows. For example, this might happen where your key is an individual ID and many individuals have just one or two observations.

-
+1 for the merge syntax and a workable solution –  Matt Weller Dec 9 '13 at 1:19
Using `wmean` proves a bit of a headache here as I would require the weighting column specified in the `.SDcols` portion even though I don't want to use it! As I'm already using `sum` on that column it's a pain to also be calculating a `weighted.mean` on the column... I guess I'd have to exclude that column BEFORE doing the `data.table` merge. –  Matt Weller Dec 23 '13 at 22:07