I've written the following Scala code to compute a distance matrix:

```
def dist(fasta: Stream[FastaRecord], f: (FastaRecord, FastaRecord) => Int) = {
val inF = fasta.par
for (i <- inF; j <- inF)
yield (f(i, j))
}
```

This code works great in the sense that I get excellent parallelism. Unfortunately, I'm doing twice as much work as I need to as f(i, j) is the same as f(j, i). What I want to do is start j at i+1 in the stream. I can do this with indices:

```
for (i <- 0 until inF.length - 1; j <- i+1 until inF.length)
yield(f(inF(i), inF(j)))
```

However, asking for inF.length I've heard is not good on a Stream and this doesn't give me the parallelism.

I think there should be a way to do this iteration, however, I haven't come up with anything yet.

thanks! jim

`j`

traverses the whole stream it should be as quick as a normal list. Meaning I think you're better off evaluating your stream with a`length`

in the beginning, and then doing only half the number of parallel calculations with your`f`

function. I'm commenting this just so you understand the performance of Streamsafterthey have been iterated over once. – Akos Krivachy Nov 24 '13 at 21:33`inF(i)`

and`inF(j)`

operations will be slow. – DaoWen Nov 25 '13 at 0:06