Question parts:

- Is there a "julia way" to implement a sliding window?
- What is needed in julia to ignore
`NaN`

s?

There is a matrix with 264 recording points (rows) and 200 time points (columns). I want to get the median correlation of each recording point with every other point over a 10 sample window.

I've tried this the matlab-way (tm) by creating a 3d 264x264x10 matrix where the third dim is the correlation for that window. In matlab, I would do `median(cors,3)`

much like julia can do `mean(cors,3)`

. But median does not have support for this. It looks like `mapslices(median,cors,3)`

might be what I want, but some recording points have NaNs. In R, I might look to `na.omit()`

or function options like `na.ignore=T`

But I don't see that for julia.

```
#oned=readdlm("10152_20111123_preproc_torque.1D")
oned=rand(200,264); oned[:,3]=NaN; oned[:,200]=NaN
windows=10
samplesPerWindow=size(oned,1)/windows
cors=zeros(size(oned,2),size(oned,2),windows)
for i=1:windows
startat=(i-1)*windows+1
endat=i*windows
corofsamples=cor(oned[startat:i*windows,:])
cors[:,:,i]= corofsamples
end
med = mapslices(median,cors,3) # fail b/c NaN
```