Numpy's meshgrid is very useful for converting two vectors to a coordinate grid. What is the easiest way to extend this to three dimensions? So given three vectors x, y, and z, construct 3x3D arrays (instead of 2x2D arrays) which can be used as coordinates.
Here is the source code of meshgrid:
It is fairly simple to understand. I extended the pattern to an arbitrary number of dimensions, but this code is by no means optimized (and not thoroughly errorchecked either), but you get what you pay for. Hope it helps:



i think what you want is
for example. 


Can you show us how you are using np.meshgrid? There is a very good chance that you really don't need meshgrid because numpy broadcasting can do the same thing without generating a repetitive array. For example,
The point is that See http://www.scipy.org/EricsBroadcastingDoc for more on numpy broadcasting. 


Instead of writing a new function, numpy.ix_ should do what you want. 


Here is a multidimensional version of meshgrid that I wrote:
Note that the returned arrays are views of the original array data, so changing the original arrays will affect the coordinate arrays. 


In case someone comes past this, numpy (as of 1.8 I think) support higher that 2D generation of position grids with meshgrid. One important addition which really helped me is the ability to chose the indexing order (either
Thank you everyone who contributes to numpy! 

