I want to recalculate a column in my `data.table`

only for certain rows, depending on a `Condition`

, the category (`Cat`

) and the `Date`

.

A row may qualify to be recalculated only if `Condition==TRUE`

. Among all rows with `Condition==TRUE`

, only the rows with the highest `Date`

for the respective `Cat`

should be selected.

A simplified example:

```
DF = data.frame(Cat=rep(c("A","B","C"),each=3), Date=rep(c("01-08-2013","01-07-2013","01-04-2013"),3),
Condition=c(TRUE, TRUE, FALSE, FALSE, FALSE, FALSE, FALSE, FALSE, TRUE),
Data1=c(1:9), Data2=rep(c(1:3),3), Result=c(1:1))
DF$Date = as.Date(DF$Date , "%m-%d-%Y")
DT = data.table(DF)
DT
Cat Date Condition Data1 Data2 Result
1: A 2013-01-08 TRUE 1 1 1
2: A 2013-01-07 TRUE 2 2 1
3: A 2013-01-04 FALSE 3 3 1
4: B 2013-01-08 FALSE 4 1 1
5: B 2013-01-07 FALSE 5 2 1
6: B 2013-01-04 FALSE 6 3 1
7: C 2013-01-08 FALSE 7 1 1
8: C 2013-01-07 FALSE 8 2 1
9: C 2013-01-04 TRUE 9 3 1
```

I found out how to extract the `Cat`

's and `Date`

's of the rows, for which the `Result`

must be recalculated:

```
setkey(DT, Condition, Cat, Date)
DT[J(TRUE), max(Date), by=Cat]
Cat V1
1: A 2013-01-08
2: C 2013-01-04
```

However, I don't know how to calculate a new `Result`

for these rows.
In this simplified example, the new `Result`

should be `Data1+Data2`

.

**Edit:**

Inspired by eddi's answer, I came up with two more possible solutions:

Approach using `.I`

:

```
DT[DT[Condition==TRUE , .I[which.max(Date)], by=Cat][[2]], Result:=Data1+Data2]
```

Approach using `.SD`

(see eddi's note of caution):

```
max_dates=DT[Condition==TRUE , .SD[which.max(Date)], by=Cat]
setkey(DT, Cat, Date)
DT[max_dates, Result:=Data1 + Data2]
```

Are there any recommendations which solution to choose with regard to speed / efficiency?