The method `fold`

(originally added for parallel computation) is less powerful than `foldLeft`

in terms of types it can be applied to. Its signature is:

```
def fold[A1 >: A](z: A1)(op: (A1, A1) => A1): A1
```

This means that the type over which the folding is done has to be a supertype of the collection element type.

```
def foldLeft[B](z: B)(op: (B, A) => B): B
```

The reason is that `fold`

can be implemented in parallel, while `foldLeft`

cannot. This is not only because of the `*Left`

part which implies that `foldLeft`

goes from left to right sequentially, but also because the operator `op`

cannot combine results computed in parallel -- it only defines how to combine the aggregation type `B`

with the element type `A`

, but not how to combine two aggregations of type `B`

. The `fold`

method, in turn, does define this, because the aggregation type `A1`

has to be a supertype of the element type `A`

, that is `A1 >: A`

. This supertype relationship allows in the same time folding over the aggregation and elements, and combining aggregations -- both with a single operator.

But, this supertype relationship between the aggregation and the element type also means that the aggregation type `A1`

in your example should be the supertype of `(ArrayBuffer[Int], Int)`

. Since the zero element of your aggregation is `ArrayBuffer(1, 2, 4, 5)`

of the type `ArrayBuffer[Int]`

, the aggregation type is inferred to be the supertype of both of these -- and that's `Serializable with Equals`

, the only least upper bound of a tuple and an array buffer.

In general, if you want to allow parallel folding for arbitrary types (which is done out of order) you have to use the method `aggregate`

which requires defining how two aggregations are combined. In your case:

```
r.aggregate(ArrayBuffer(1, 2, 4, 5))({ (x, y) => x -- y._1 }, (x, y) => x intersect y)
```

Btw, try writing your example with `reduce`

/`reduceLeft`

-- because of the supertype relationship between the element type and the aggregation type that both these methods have, you will find that it leads to a similar error as the one you've described.