How to create mean and s.d. columns in data.table

The following code/outcome baffles me as to why data.table returns NA for the mean functions and not the sd function.

``````library(data.table)
test <- data.frame('id'=c(1,2,3,4,5),
'A'=seq(2,9,length=5),
'B'=seq(3,9,length=5),
'C'=seq(4,9,length=5),
'D'=seq(5,9,length=5))

test <- as.data.table(test)

test[,`:=`(mean_test = mean(.SD), sd_test = sd(.SD)),by=id,.SDcols=c('A','B','C','D')]
> test
id    A   B    C    D mean_test   sd_test
1:  1 2.00 3.0 4.00 5        NA 1.2909944
2:  2 3.75 4.5 5.25 6        NA 0.9682458
3:  3 5.50 6.0 6.50 7        NA 0.6454972
4:  4 7.25 7.5 7.75 8        NA 0.3227486
5:  5 9.00 9.0 9.00 9        NA 0.0000000
``````

I've learned quite a bit searching around, going through the DT tutorials/examples. This question is very similar to what I was hoping to do.

Why does the standard deviation function work and the mean function return NA?

Edit: Using Ricardo Saporta's solution:

``````test[,`:=`(mean_test = apply(.SD, 1, mean), sd_test = apply(.SD, 1, sd),by=id,.SDcols=c('A','B','C','D')]

> test
id    A   B    C D mean_test   sd_test
1:  1 2.00 3.0 4.00 5     3.500 1.2909944
2:  2 3.75 4.5 5.25 6     4.875 0.9682458
3:  3 5.50 6.0 6.50 7     6.250 0.6454972
4:  4 7.25 7.5 7.75 8     7.625 0.3227486
5:  5 9.00 9.0 9.00 9     9.000 0.0000000
``````
• there is no need for `test <- test[, `:=` .... ` - In fact, the whole point of the `:=` operator is to avoid this re-assigning ;) Commented Aug 27, 2014 at 19:40
• Thanks, I made the update. Still running into a problem though. Commented Aug 27, 2014 at 19:45

`.SD` is itself a `data.table`
Thus, when you take `mean(.SD)` you are (attempting) to take the mean of an entire data.table

The function `mean()` does not know what to do with the data.table and returns `NA`

Have a look

``````## the .SD in your question is the same as
test[, c('A','B','C','D')]

## try taking its mean
mean(test[, c('A','B','C','D')])

# Warning in mean.default(test[, c("A", "B", "C", "D")]) :
#   argument is not numeric or logical: returning NA
# [1] NA
``````

use `lapply(.SD, mean)` for column-wise or `apply(.SD, 1, mean)` for row-wise

You can make `mean` work by using `rowMeans` instead, and thus avoid using `apply` (similar to the linked question)

``````test[,`:=`(mean_test = rowMeans(.SD),
sd_test = sd(.SD)),
by=id,.SDcols=c('A','B','C','D')]
test
#    id    A   B    C D mean_test   sd_test
# 1:  1 2.00 3.0 4.00 5     3.500 1.2909944
# 2:  2 3.75 4.5 5.25 6     4.875 0.9682458
# 3:  3 5.50 6.0 6.50 7     6.250 0.6454972
# 4:  4 7.25 7.5 7.75 8     7.625 0.3227486
# 5:  5 9.00 9.0 9.00 9     9.000 0.0000000
``````

Rather as a fun fact, one can use a vector of columns in `mean()` and `sd()`:

``````test[, `:=` (mean = mean(c(A,B,C,D)),
sd   = sd(c(A,B,C,D))),  by=id]
test
#    id    A   B    C D   mean        sd
# 1:  1 2.00 3.0 4.00 5  3.500 1.2909944
# 2:  2 3.75 4.5 5.25 6  4.875 0.9682458
# 3:  3 5.50 6.0 6.50 7  6.250 0.6454972
# 4:  4 7.25 7.5 7.75 8  7.625 0.3227486
# 5:  5 9.00 9.0 9.00 9  9.000 0.0000000
``````

And you can also use `quote()` and `eval()`:

``````cols <- quote(c(A,B,C,D))
test[, ':=' (mean = mean(eval(cols)),
sd  = sd(eval(cols))),  by=id]
``````
• Though you will need to also do `by=id` which is vasically doing a by-row operations. Commented Jul 9, 2017 at 7:26