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 Nd 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

Not quite sure this will work for you and it is not available yet, but in the development version of numpy there is a 'pad' array function... https://github.com/numpy/numpy/blob/master/numpy/lib/arraypad.py One of the options is 'linear_ramp' which extrapolates (pads) outward starting at the edge value and linearly increase/decreases to a specified end value. It is a pure python function so you could just copy it into your path and import (untested by me though) 

