# Matlab returning only NANs from a vector that has NaNs and non-NaNs

I have simulation data in a vector of size 50,000 x 1, which has NaNs and non-NaNs. I would like to average the non-NaNs, but the function nanmean returns NAN. I have tried removing the NANs, but I only get a vector of zeros. Visual inspection of the vector leads me to doubt that the true mean of this vector is really NaN.

Also, I would like to use this vector to compute covariance with several other vectors (at some point). My alternative is doing this in Excel, which would be painful.

Any thoughts?

Thank you

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Let's say your data in stored in a vector `A`, you can take the mean of the vector excluding the `NaNs` as well as any `Inf` and `-Inf` values via:

``````meanA = mean( A(isfinite(A)) );
``````
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This also returns NaN. Does this mean that the true average of my vector is really NaN? I have a hard time believing this is the case. –  user2297300 May 1 '13 at 0:16
This code will pick out all the elements that are not NaN, so if you still get a NaN result, then your vector contains no finite elements. What happens if you try `size(A(~isnan(A)))`? –  craigim May 1 '13 at 0:22
If your vector for some reason contains `Inf` as well as `-Inf`, `NaN` removal could still result in a value of `NaN` for the mean. If `Inf` and `-Inf` are summed, `NaN` is produced. –  Ryan J. Smith May 1 '13 at 0:26
I do have Inf and -Inf. I would like to remove these values and calculate a mean of non-Nan, non(-)inf values. Any thoughts? –  user2297300 May 1 '13 at 0:47
Use the example I posted in the edited answer above. –  Ryan J. Smith May 1 '13 at 1:04

Assuming you have a vector that only contains finite numeric values, and a `NaN` here and there, the solution is very simple

``````nanmean(A)
``````

This should only bring trouble if there are non finite values in your vector. In this case you could filter them out as suggested by @Ryan, but then you need to realize that you are not actually calculating the mean of the vector.

``````nanmedian(A)
About the calculation of covariances and the likes, assuming you have vectors `v` and `w`, then I would recommend you to do something like this:
``````idx = isfinite(v) & isfinite(w);