I am trying to map an irregularly gridded dataset (raw satellite data) with associated latitudes and longitudes to a regularly gridded set of latitudes and longitudes given by `basemap.makegrid()`

. I am using `matplotlib.mlab.griddata`

with `mpl_toolkits.natgrid`

installed. Below is a list of the variables being used as output by `whos`

in ipython and some stats on the variables:

```
Variable Type Data/Info
-------------------------------
datalat ndarray 666x1081: 719946 elems, type `float32`, 2879784 bytes (2 Mb)
datalon ndarray 666x1081: 719946 elems, type `float32`, 2879784 bytes (2 Mb)
gridlat ndarray 1200x1000: 1200000 elems, type `float64`, 9600000 bytes (9 Mb)
gridlon ndarray 1200x1000: 1200000 elems, type `float64`, 9600000 bytes (9 Mb)
var ndarray 666x1081: 719946 elems, type `float32`, 2879784 bytes (2 Mb)
In [11]: var.min()
Out[11]: -30.0
In [12]: var.max()
Out[12]: 30.0
In [13]: datalat.min()
Out[13]: 27.339874
In [14]: datalat.max()
Out[14]: 47.05302
In [15]: datalon.min()
Out[15]: -137.55658
In [16]: datalon.max()
Out[16]: -108.41629
In [17]: gridlat.min()
Out[17]: 30.394031556984299
In [18]: gridlat.max()
Out[18]: 44.237140350357713
In [19]: gridlon.min()
Out[19]: -136.17646180595321
In [20]: gridlon.max()
Out[20]: -113.82353819404671
```

`datalat`

and `datalon`

are the orignal data coordinates

`gridlat`

and `gridlon`

are the coordinates to interpolate to

`var`

contains the actual data

Using these variables, when I call `griddata(datalon, datalat, var, gridlon, gridlat)`

it has taken as long as 20 minutes to complete and returns an array of `nan`

. From looking at the data, the latitudes and longitudes appear to be correct with the original coordinates overlapping a portion of the new area and a few data points lying outside of the new area. Does anyone have any suggestions? The nan values suggest that I'm doing something stupid...