I'm trying to visualize a numpy array using imshow() since it's similar to imagesc() in Matlab.

imshow(random.rand(8, 90), interpolation='nearest')

The resulting figure is very small at the center of the grey window, while most of the space is unoccupied. How can I set the parameters to make the figure larger? I tried figsize=(xx,xx) and it's not what I want. Thanks!

  • 3
    Just adding this comment in case others like me struggle to land on this post --- the problem happens (most visibly) when the x and y data are of different orders of magnitude; @bmu's answer fixes it – mwarrior May 31 '19 at 19:19

If you don't give an aspect argument to imshow, it will use the value for image.aspect in your matplotlibrc. The default for this value in a new matplotlibrc is equal. So imshow will plot your array with equal aspect ratio.

If you don't need an equal aspect you can set aspect to auto

imshow(random.rand(8, 90), interpolation='nearest', aspect='auto')

which gives the following figure


If you want an equal aspect ratio you have to adapt your figsize according to the aspect

fig, ax = subplots(figsize=(18, 2))
ax.imshow(random.rand(8, 90), interpolation='nearest')

which gives you:


  • besides defining the aspect ratio, is it possible to get(define) the size of the colored tiles? – Alexander Cska Feb 5 '20 at 9:45

That's strange, it definitely works for me:

from matplotlib import pyplot as plt

plt.figure(figsize = (20,2))
plt.imshow(random.rand(8, 90), interpolation='nearest')

I am using the "MacOSX" backend, btw.

  • 5
    to be clear, it must be plt.figure(figsize = (x_new, y_new)) and for imgshow() you must now import ioimage because the SciPy imageshow() will be deprecated soon – Agile Bean Oct 22 '18 at 16:46
  • 1
    @AgileBean it would be useful if you were to either edit this post with that information or add it as an answer to this question – baxx May 1 '20 at 23:31

Update 2020

as requested by @baxxx, here is an update because random.rand is deprecated meanwhile.

This works with matplotlip 3.2.1:

from matplotlib import pyplot as plt
import random
import numpy as np

random = np.random.random ([8,90])

plt.figure(figsize = (20,2))
plt.imshow(random, interpolation='nearest')

This plots:

enter image description here

To change the random number, you can experiment with np.random.normal(0,1,(8,90)) (here mean = 0, standard deviation = 1).


I'm new to python too. Here is something that looks like will do what you want to

axes([0.08, 0.08, 0.94-0.08, 0.94-0.08]) #[left, bottom, width, height]

I believe this decides the size of the canvas.

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