# Count number of records and generate row number within each group in a data.table

I have the following data.table

``````set.seed(1)
DT <- data.table(VAL = sample(c(1, 2, 3), 10, replace = TRUE))
VAL
1:   1
2:   2
3:   2
4:   3
5:   1
6:   3
7:   3
8:   2
9:   2
10:   1
``````

Within each number in `VAL` I want to:

1. Count the number of records/rows
2. Create an row index (counter) of first, second, third occurrence et c.

At the end I want the result

``````    VAL COUNT IDX
1:   1     3   1
2:   2     4   1
3:   2     4   2
4:   3     3   1
5:   1     3   2
6:   3     3   2
7:   3     3   3
8:   2     4   3
9:   2     4   4
10:   1     3   3
``````

where "COUNT" is the number of records/rows for each "VAL", and "IDX" is the row index within each "VAL".

I tried to work with `which` and `length` using `.I`:

`````` dt[, list(COUNT = length(VAL == VAL[.I]),
IDX = which(which(VAL == VAL[.I]) == .I))]
``````

but this does not work as `.I` refers to a vector with the index, so I guess one must use `.I[]`. Though inside `.I[]` I again face the problem, that I do not have the row index and I do know (from reading `data.table` FAQ and following the posts here) that looping through rows should be avoided if possible.

So, what's the `data.table` way?

Using `.N`...

``````DT[ , `:=`( COUNT = .N , IDX = 1:.N ) , by = VAL ]
#    VAL COUNT IDX
# 1:   1     3   1
# 2:   2     4   1
# 3:   2     4   2
# 4:   3     3   1
# 5:   1     3   2
# 6:   3     3   2
# 7:   3     3   3
# 8:   2     4   3
# 9:   2     4   4
#10:   1     3   3
``````

`.N` is the number of records in each group, with groups defined by `"VAL"`.

• +1. And `.N,.I` and other special symbols are documented in `?`[.data.table`` – Frank Nov 8 '13 at 22:24
• @Frank I attached the problem in a too complicated way as it seems :) – Simon Z. Nov 9 '13 at 8:02
• Better `seq_len(.N)` instead `1:.N`. – Artem Klevtsov Jan 1 '17 at 19:59