# Matplotlib surface plot of precomputed values

I trying to plot a grid of values obtained via finite differencing. Hence all the examples which show me how to make a mesh-grid output xx, yy then feed these into f to generate a grid-evaluation f(xx, yy) won't work.

If I were to plug in the grid, as I filled it in as in the example below, I am required to transpose my grid in order for it to work. This doesn't make any sense to me. Could someone explain please?

``````# Calculations

import itertools
import numpy

x_array = numpy.linspace(0, 1, 5)
y_array = numpy.linspace(0, 3, 20)

num_x = len(x_array)
num_y = len(y_array)

heights = numpy.zeros((num_x, num_y))
for x, y in itertools.product(xrange(num_x), xrange(num_y)):
heights[x, y] = numpy.random.normal() + x + y
# actual usage is a complicated finite difference scheme, so cannot be made explicit in terms of x & y

# Plotting

import matplotlib; matplotlib.use("Qt4Agg")
import matplotlib.pyplot as plt
from mpl_toolkits.mplot3d import Axes3D

fig = plt.figure()
x_mesh, y_mesh = numpy.meshgrid(x_array, y_array)
try:
ax.pcolor(x_mesh, y_mesh, heights)
except ValueError as E:
print "Error:", E
try:
ax.pcolor(x_mesh, y_mesh, heights.T)
ax.plot_surface(x_mesh, y_mesh, heights.T, cmap=matplotlib.cm.coolwarm)
colorbar = matplotlib.cm.ScalarMappable(cmap=matplotlib.cm.coolwarm)
colorbar.set_array(heights)
fig.colorbar(colorbar)
print "No problems, but why should heights be transposed??"
except Exception as E:
print "Error:", E
plt.show()
``````
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so to be clear, this works but you are asking why you need the transpose?

If you look at the shape of your arrays:

``````In [75]: x_mesh.shape
Out[75]: (20, 5)

In [76]: y_mesh.shape
Out[76]: (20, 5)

In [77]: heights.shape
Out[77]: (5, 20)
``````

It is clear that to match them up element-wise you need to transpose your heights.

Your notion of which directions in the array is `x` and `y` is opposite of the notion that `matplotlib` has. Likely related to a row-major vs col-major conflict.

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