# matplotlib imshow display ratio fix to square

I have code that produces a plot based on the example below. I would like to force the outputted plot to be a `128x128` square if possible instead of `64x128`. The data I have is intended to be viewed as a square even though its matrix does not exhibit NxN properties.

Thank you.

``````import numpy as np
import pylab as pl

my_matrix = []
for x in range(128):
row = []
for value in range(64):
row.append( float(value) / 63 )
my_matrix.append(row)

array = np.matrix(my_matrix)
pl.axes()
pl.imshow(array, interpolation='none', cmap='jet', origin='lower')
pl.colorbar(shrink=0.95)
pl.xticks(())
pl.yticks(())
pl.show()
``````

You can define the axes aspect ratio as follows:

``````pl.axes().set_aspect(0.5)
``````

The factor 0.5 compensates the aspect ration 128:64 = 2:1 of your data.

For further information you might look into this answer.

• Do you also know how I can set my colorbar() ticks such that [-18, -14, -12, -10, -8, -6, -4, -2] where -18 is at the bottom and -2 is at the top. Also -18 tick correlates to values closest to zero and -2 tick correlates to values closest to 1.
– Matt
Aug 22, 2014 at 22:08
• @Matt: Have a look into the `clim` argument, e.g. `pl.imshow(..., clim=[-18,-2])`. This way you can limit the color range. But it should correspond to the data, so you might scale them accordingly: `pl.imshow(array * (-18), ..., clim=[-18,-2])`. Aug 22, 2014 at 22:16
• Ok Thanks. I essentially have a dataset which represents different orders of magnitude. from `10E-18` to `zero` in increments of `10E-2`. I'm a total noob to `matplotlib` so I appreciate it!
– Matt
Aug 22, 2014 at 22:24