I have a long vector, containing > 1 million entries, distributed according to a probability density function (Gaussian). I only need the positive values, and these I find as in the following MWE

```
N = 1.5e6;
vals = normrnd(0, 1, N, 1);
final = [];
for i=1:length(vals)
if(vals(i)>0)
final = [final vals(i)];
end
end
```

The problem is that this takes a long time. Is there a smarter way to do this in MatLAB?

Thanks, Niles.

`final`

. At each iteration you allocate (though you don't seem to have realised this) a new block of space labelled`first`

into which you copy the existing elements of`first`

and a new element, then release the space for the old version of`first`

back into the free pool. Looping through a long vector is fast, but repeated memory allocation is not. – High Performance Mark Nov 22 '12 at 17:43