Is it possible to use the key value in the condition for creating a new column using `:=`

with `data.table`

?

```
set.seed(315)
DT = data.table(a = factor(LETTERS[rep(c(1:5), 2)]),
b = factor(letters[rep(c(1, 2), 5)]),
c = rnorm(10), key = c("a", "b"))
```

Which gives a `data.table`

that looks like this:

```
> DT
a b c
1: A a 0.11610792
2: A b -2.67495409
3: B a -0.18467740
4: B b 0.79994197
5: C a 0.74565643
6: C b 0.49959003
7: D a 0.04385948
8: D b -2.25996438
9: E a -1.86204824
10: E b 0.11327201
```

I want to create a new column `d`

that is the difference of the values from *A,a* and *A,b*, *B,a* and *B, b*, and so on. I'd like to use the `:=`

because of how fast it can fly on large datasets.

I can get the `d`

column that I'm looking for with a furry of creating new `data.table`

s, merges, and more but this just feels ugly.

```
dt.a <- DT[DT[, .I[b == "a"]]]
dt.b <- DT[DT[, .I[b == "b"]]]
dt <- merge(dt.a, dt.b, by = c("a"))
dt <- merge(dt.a, dt.b, by = c("a"))
> dt
a b.x c.x b.y c.y
1: A a 0.11610792 b -2.674954
2: B a -0.18467740 b 0.799942
3: C a 0.74565643 b 0.499590
4: D a 0.04385948 b -2.259964
5: E a -1.86204824 b 0.113272
> dt[, d:= c.x - c.y]
> dt
a b.x c.x b.y c.y d
1: A a 0.11610792 b -2.674954 2.7910620
2: B a -0.18467740 b 0.799942 -0.9846194
3: C a 0.74565643 b 0.499590 0.2460664
4: D a 0.04385948 b -2.259964 2.3038239
5: E a -1.86204824 b 0.113272 -1.9753203
```

Is there a more direct way?

This gets the job done, sort of. Without splitting apart the data, each value in `d`

would be repeated for each value in the original `DT[,a]`

. That's ok.