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PROBLEM


When using matplotlib and plotting 3d bars on a chart I got wrong normals values on some bar faces.


EXAMPLE


When I plot a high density bins graph, with 240 bars, I get this result: enter image description here

See that some faces of some bars are wrong? The bars Z order gets wrong too.


ABOUT


I'm using the latest stable version of Matplotlib and Numpy. My Python version is 2.7.3


LOGS


This is the only warning the I get from console:

RuntimeWarning: invalid value encountered in divide for n in normals])


Any help is much appreciated.


EDIT

With @Saullo Castro answer, this is the new graph produced: enter image description here

Or, using the sample presented in the answer (see the region marked with red dots):

enter image description here

The only problem left is the bar face on the top, but is already pretty good. If anyone has any comments on this, feel free to help me.

share|improve this question
up vote 1 down vote accepted

Using the parameter zsort='max' when you call ax.bar3d()solves your problem (see here):

ax.bar3d(xpos,ypos,zpos, dx, dy, dz,  color='b', alpha=1., zsort='max')

I used a modified version of the code from this other question to play with your problem:

from mpl_toolkits.mplot3d import Axes3D
import matplotlib.pyplot as plt
import numpy as np

data = np.array([[0,1,0,2,0],
                 [0,3,0,2,0],
                 [6,1,1,7,0],
                 [0,5,0,2,9],
                 [0,1,0,4,0],
                 [9,1,3,4,2],
                 [0,0,2,1,3], ])

column_names = ['a','b','c','d','e']
row_names = ['Mon','Tue','Wed','Thu','Fri','Sat','Sun']

fig = plt.figure()
ax = Axes3D(fig)

lx= len(data[0])            # Work out matrix dimensions
ly= len(data[:,0])
xpos = np.arange(0,lx,1)    # Set up a mesh of positions
ypos = np.arange(0,ly,1)
xpos, ypos = np.meshgrid(xpos+0.5, ypos+0.5)

xpos = xpos.flatten()   # Convert positions to 1D array
ypos = ypos.flatten()
zpos = np.ones(lx*ly)*1e-10

dx = 1. * np.ones_like(zpos)
dy = dx.copy()
dz = data.flatten()

ax.bar3d(xpos,ypos,zpos, dx, dy, dz,  color='b', alpha=1., zsort='max')
plt.ion()
plt.show()
share|improve this answer
    
Thanks, @SaulloCastro This modification is almost the perfect one. Z order is now ok, except by the bars top face. I'll post the new image produced. – Gui Senges May 1 '13 at 17:22
    
Good to hear that! Post and we can take a look at it... – Saullo Castro May 1 '13 at 17:24
    
It's already there. If you have any comments, please, feel free to edit. Thanks! – Gui Senges May 1 '13 at 17:33
    
I am trying here going deeper now. If you look in ax.collections[0]._facecolors you will find some nan, we have to understand how matplotlib treats these nans to find out if they are the problem for the weird bar tops – Saullo Castro May 1 '13 at 18:45

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