I have a matrix of data values that looks a bit like this, though significantly larger (2000+ rows, 30+ columns):

```
NaN 12 3 NaN 18 NaN 42 NaN NaN NaN NaN...
68 NaN 14 Nan NaN NaN NaN NaN NaN NaN 26 ...
...
```

So you see that is largely populated by NaN values. What I am interested in, naturally, are the cells that are populated by values.

I want to be able to run anovan on this data set, and unfortunately it is too large to reformat by hand. What I want to do is have a script run through the matrix, find every value that is not NaN and its index in the matrix, and create three arrays for the anovan input:

Values=[ 12 3 18 42 68 14 26 ...]

Rows= [ 1 1 1 1 2 2 2 ...]

Columns= [ 2 3 5 7 1 3 11 ...]

The rows and columns correspond to raters and ratees in a study, which is why they it is so important for me to preserve the exact index of each value.

I cannot figure out how to do this, though.

I have tried using find, but can't get it to do what I want.

```
[r c v] = find(~isnan(datamatrix)) %% doesn't work
```

EDIT: It occurs to me I could just do:

```
[r c v] = find(datamatrix)
```

This will include all of the NaN values, in the [r c v] output, though. In that situation, how would I go through the V array and delete the NaN values AND their corresponding R and C values?

EDIT2: Scratch that. I forgot that some of my values are 0, so I can't use the FIND command.