# How can I smooth a set of 3D points?

this question is an extension of my previous question that you can find here:

How to plot a data cube in python

The thing is that I have a 3D plot of point but if I follow the method of my previous question I could get an overflow error when I have too many points to plot. I have to plot millions of points so I need to smooth the 3D distribution, otherwise it takes a huge amount of time to make the plot and I could also get memory errors.

I was thinking that maybe I can convolve the distribution with a Gaussian kernel, but I don't know if it's the best option. Moreover, I am not able to do it yet.

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I think the answer depends upon which information you consider the most important. There are different options, depending on which information you are more willing to lose. –  user e to the power of 2pi Aug 17 '11 at 11:49
I am interested on the spatial distribution of this point, on average. –  Matteo Aug 17 '11 at 12:06
First: if you have millions of points, will you ever be able to see past the edges of your cube? In other words: is a 3d visualization the best idea or might you be better off making 2d slices (for example?. Furhermore: you might construct a 3d array, filling every cell with the mean or median of the points within that cell. –  Daan Aug 17 '11 at 12:42
Yes, you're right, that's what I did for a 2D visualization, but I would like to see the data cube. –  Matteo Aug 17 '11 at 13:01
Could you give an example of how your preferred solution should look? Perhaps a pen&paper sketch of your ideal graph. Or is your question merely how you can reduce the number of points while losing minimal information? Then a sample of your data would help: are the points clustered or evenly spread? Are the function values at (x,y,z) randomly varying or smoothly distributed? Etcetera, etcetera. –  Daan Aug 17 '11 at 14:39