This question is similar but not identical to Add multiple columns to R data.table in one function call?

Let's say I have a data.table

```
ex<-data.table(AAA=runif(100000),BBBB=runif(100000),CCC=runif(100000),DDD=runif(100000),EEE=runif(100000),FFF=runif(100000),HHH=runif(100000),III=runif(100000),FLAG=c(rep(c("a","b","c","d","e"),200000)))
```

I can get the sum and mean of all the columns by doing

```
ex[,c(sum=lapply(.SD,sum),mean=lapply(.SD,mean)),by=FLAG]
```

The results look good with the names I specified in the J appended to the existing column names for easy identification with only 1 row for each of the values of `FLAG`

, as expected.

However, let's say I have a function that returns a list such as

```
sk<-function(x){
meanx<-mean(x)
lenx<-length(x)
difxmean<-x-meanx
m4<-sum((difxmean)^4)/lenx
m3<-sum((difxmean)^3)/lenx
m2<-sum((difxmean)^2)/lenx
list(mean=meanx,len=lenx,sd=m2^.5,skew=m3/m2^(3/2),kurt=(m4/m2^2)-3)
}
```

If I do

```
ex[,lapply(.SD,sk),by=FLAG]
```

I get results with a row for each output of the list. I'd like to still have just 1 row of results with columns for each of the original columns and function results.

For example the output columns should be

```
AAA.mean AAA.len AAA.sd AAA.skew AAA.kurt BBBB.mean BBBB.len BBBB.sd BBBB.skew BBBB.kurt .... III.mean III.len III.sd III.skew III.kurt
```

Is there a way to do this?

I know I could just put all these individual functions in the J and get the columns but I find that when I use this function instead of the individual functions for all the moments it is a good bit faster.

```
x<-runif(10000000)
system.time({
mean(x)
length(x)
sd(x)
skewness(x)
kurtosis(x)
})
user system elapsed
5.84 0.47 6.30
system.time(sk(x))
user system elapsed
3.9 0.1 4.0
```