**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### This is outdated.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.