It is not enough to just mesh in x and y, you need to grid your data on a regular grid to be able to do a contour plot. To do this you should look into `matplotlib.mlab.griddata`

(http://matplotlib.org/examples/pylab_examples/griddata_demo.html).

I'll paste the example code from the link below with some extra comments:

```
from numpy.random import uniform, seed
from matplotlib.mlab import griddata
import matplotlib.pyplot as plt
import numpy as np
# Here the code generates some x and y coordinates and some corresponding z values.
seed(0)
npts = 200
x = uniform(-2,2,npts)
y = uniform(-2,2,npts)
z = x*np.exp(-x**2-y**2)
# Here you define a grid (of arbitrary dimensions, but equal spacing) onto which your data will be mapped
xi = np.linspace(-2.1,2.1,100)
yi = np.linspace(-2.1,2.1,200)
# Map the data to the grid to get a 2D array of remapped z values
zi = griddata(x,y,z,xi,yi,interp='linear')
# contour the gridded data, plotting dots at the nonuniform data points.
CS = plt.contour(xi,yi,zi,15,linewidths=0.5,colors='k')
CS = plt.contourf(xi,yi,zi,15,cmap=plt.cm.rainbow,
vmax=abs(zi).max(), vmin=-abs(zi).max())
plt.colorbar() # draw colorbar
# Plot the original sampling
plt.scatter(x,y,marker='o',c='b',s=5,zorder=10)
plt.xlim(-2,2)
plt.ylim(-2,2)
plt.title('griddata test (%d points)' % npts)
plt.show()
```