I have a data.table of a and b that I've partitioned into `below`

with b < .5 and `above`

with b > .5:

```
DT = data.table(a=as.integer(c(1,1,2,2,3,3)), b=c(0,0,0,1,1,1))
above = DT[DT$b > .5]
below = DT[DT$b < .5, list(a=a)]
```

I'd like to do a left outer join between `above`

and `below`

: for each `a`

in `above`

, count the number of rows in `below`

. This is equivalent to the following in SQL:

```
with dt as (select 1 as a, 0 as b union select 1, 0 union select 2, 0 union select 2, 1 union select 3, 1 union select 3, 1),
above as (select a, b from dt where b > .5),
below as (select a, b from dt where b < .5)
select above.a, count(below.a) from above left outer join below on (above.a = below.a) group by above.a;
a | count
---+-------
3 | 0
2 | 1
(2 rows)
```

How do I accomplish the same thing with data.tables? This is what I tried so far:

```
> key(below) = 'a'
> below[above, list(count=length(b))]
a count
[1,] 2 1
[2,] 3 1
[3,] 3 1
> below[above, list(count=length(b)), by=a]
Error in eval(expr, envir, enclos) : object 'b' not found
> below[, list(count=length(a)), by=a][above]
a count b
[1,] 2 1 1
[2,] 3 NA 1
[3,] 3 NA 1
```

I should also be more specific in that I already tried `merge`

but that blows through the memory on my system (and the dataset takes only about 20% of my memory).