3D Extrapolation in python (basically, scipy.griddata extended to extrapolate)

I am using the griddata function in scipy to interpolate 3 and 4 dimensional data. It works like a champ, except that it returns a bunch of NaNs because some of the points I need are outside the range of the input data. Given that N-d data only works with the "linear" mode interpolation anyway, it should be a snap to have griddata do an extrapolation instead of just returning NaN. Has anyone done this or found a workaround? To clarify: I have unstructured data, so I can't use any of the functions that require a regular grid. Thanks! Alex

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Would it help to fill the points outside the range with some constant value? In that case, you could just specify the fill_value – Dhara Jun 26 '12 at 19:34
Also, are you sure you want to extrapolate? sometimes, getting out NaNs and knowing you are going out of range is a much better choice. I have used Univariate splines from scipy, it silently extrapolates and the results can be quite "off" – Dhara Jun 26 '12 at 19:37
My situation is: I measure some values at a few points, and need to then calculate values at a bunch of other points through inter/extrapolation. So a constant value, or NaN really don't help. I know how temperamental the splines can be, so I was thinking linear would be a safe bet. I would like something that works on N-d data though. – user1483697 Jun 27 '12 at 13:28
This is actually a bit more nontrivial than it seems in these triangulation-based methods. For each point outside the tesselation, you need to choose which simplex you extrapolate from, and also have a fast algorithm to find this simplex. Also, if you want to avoid discontinuities in the extrapolation, some care is needed. After that is sorted out, however, the linear extrapolation is a simple matter. – pv. Jun 27 '12 at 16:36
I am just going to do a 2nd run as nearest and use that to fill in the gaps. thanks! – user1483697 Jul 2 '12 at 16:23