I've added this to the list here. And hopefully we'll be able to deliver as planned.

The reason is most likely that `by=.EACHI`

is a recent feature (since 1.9.4), *but what it does isn't*. Let me explain with an example. Suppose we have two data.tables `X`

and `Y`

:

```
X = data.table(x = c(1,1,1,2,2,5,6), y = 1:7, key = "x")
Y = data.table(x = c(2,6), z = letters[2:1], key = "x")
```

We know that we can join by doing `X[Y]`

. this is similar to a *subset* operation, but using `data.tables`

(instead of integers / row names or logical values). For each row in `Y`

, taking `Y`

's key columns, it finds and returns corresponding matching rows in `X`

's key columns (+ columns in `Y`

) .

```
X[Y]
# x y z
# 1: 2 4 b
# 2: 2 5 b
# 3: 6 7 a
```

Now let's say we'd like to, for each row from `Y`

's key columns (here only one key column), we'd like to get the *count* of matches in `X`

. In versions of `data.table`

**< 1.9.4**, we can do this by simply specifying `.N`

in `j`

as follows:

```
# < 1.9.4
X[Y, .N]
# x N
# 1: 2 2
# 2: 6 1
```

What this *implicitly* does is, in the presence of `j`

, evaluate the `j-expression`

on each matched result of `X`

(corresponding to the row in `Y`

). This was called *by-without-by* or *implicit-by*, because it's as if there's a hidden by.

The issue was that this'll always perform a `by`

operation. So, if we wanted to know the number of rows after a join, then we'd have to do: `X[Y][ .N]`

(or simply `nrow(X[Y])`

in this case). That is, we can't have the `j`

expression in the same call if we don't want a `by-without-by`

. As a result, when we did for example `X[Y, list(z)]`

, it evaluated `list(z)`

using `by-without-by`

and was therefore slightly slower.

Additionally `data.table`

users requested this to be *explicit* - see this and this for more context.

Hence `by=.EACHI`

was added. Now, when we do:

```
X[Y, .N]
# [1] 3
```

it does what it's meant to do (avoids confusion). It returns the number of rows resulting from the join.

And,

```
X[Y, .N, by=.EACHI]
```

evaluates `j`

-expression on the matching rows for each row in `Y`

(corresponding to value from `Y`

's key columns here). It'd be easier to see this by using `which=TRUE`

.

```
X[.(2), which=TRUE] # [1] 4 5
X[.(6), which=TRUE] # [1] 7
```

If we run `.N`

for each, then we should get 2,1.

```
X[Y, .N, by=.EACHI]
# x N
# 1: 2 2
# 2: 6 1
```

So we now have both functionalities.

`.EACHI`

`.EACHI`

defines groups based on the way the merge between`i`

and`DT`

occurs. that is, if`i`

uses a key for merging that key defines the groups for`DT`

. in other words, each row in`i`

represents a group (along with the returned rows of`DT`

). would be good if package owner could confirm. and in that case, is that fasted then specifying a`by=`

condition?