When using the `reduce()`

operation on a parallelstream the OCP exam book states that there are certain principles the `reduce()`

arguments must adhere too. Those arguments are the following:

- The identity must be defined such that for all elements in the stream u, combiner.apply(identity, u) is equal to u.
- The accumulator operator op must be associative and stateless such that
`(a op b) op c`

is equal to`a op (b op c)`

. - The combiner operator must also be associative and stateless and compatible with the identity, such that for all of
`u`

and`t`

`combiner.apply(u, accumulator.apply(identity, t))`

is equal to`accumulator.apply(u,t)`

.

The exam book gives two examples to illustrate these principles, please see the code below:

example for associative:

```
System.out.println(Arrays,asList(1,2,3,4,5,6))
.parallelStream()
.reduce(0,(a,b) -> (a-b))); //NOT AN ASSOCIATIVE ACCUMULATOR
```

What the OCP book says about this:

It may output -21, 3, or some other value as the accumulator function violates the associativity property.

example for the identity requirement:

```
System.out.println(Arrays.asList("w","o","l","f"))
.parallelStream()
.reduce("X", String::concat));
```

What the OCP book says about this:

You can see other problems if we use an identity parameter that is not truly an identity value. It can output XwXoXlXf. As part of the parallel process, the identity is applied to multiple elements in the stream, resulting in very unexpected data.

I don't understand those examples. With the accumulator example the accumulator starts with 0 -1 = -1 then -1 -2 which is = -3 then -6 etc etc all the way to -21. I understand that, because the generated arraylist isen't synchronized the results maybe be unpredictable because of the possibility of race conditions etc, but why isen't the accumulator associative? Woulden't `(a+b)`

cause unpredictable results too? I really don't see whats wrong with the accumulator being used in the example and why its not associative, but then again I still don't exactly understand what is being ment with the associative principle.

I don't understand the identity example either. I understand that the result could indeed be XwXoXlXf if 4 separate threads were to start accumulating with the identity at the same time, but what does that have to do with the identity parameter itself? What exactly would be a proper identity to use then?

I was wondering if anyone could enlighten me a bit more on these principles.

Thank you

AssociativityAn operator or function`op`

is associative if the following holds:`(a op b) op c == a op (b op c)`

The importance of this to parallel evaluation can be seen if we expand this to four terms:`a op b op c op d == (a op b) op (c op d)`

So we can evaluate`(a op b)`

in parallel with`(c op d)`

, and then invoke`op`

on the results.” For examples of valid identity values, see here – Holger Jul 12 '17 at 14:08`List`

isnotan issue; there is no need to have a synchronized list for a parallel stream. You must not modify the source list while the operation is ongoing, but that applies to sequential streams as well. – Holger Jul 12 '17 at 14:14