Assuming we have a polygon coordinates as polygon = [(x1, y1), (x2, y2), ...], the following code displays the polygon:

import matplotlib.pyplot as plt

By default it is trying to adjust the aspect ratio so that the polygon (or whatever other diagram) fits inside the window, and automatically changing it so that it fits even after resizing. Which is great in many cases, except when you are trying to estimate visually if the image is distorted. How to fix the aspect ratio to be strictly 1:1?

(Not sure if "aspect ratio" is the right term here, so in case it is not - I need both X and Y axes to have 1:1 scale, so that (0, 1) on both X and Y takes an exact same amount of screen space. And I need to keep it 1:1 no matter how I resize the window.)


4 Answers 4


Does it help to use:

  • 12
    you can also use plt.axis('scaled') Jun 21, 2013 at 14:45
  • I don't understand why, but contrary to scaled setting, when I changed ylim and xlim after axis('equal'), the tick sizes became unequal, and even some data from my scatter plot became cropped out... Jun 13, 2019 at 12:26
  • 1
    what is the difference of using plt.axis('scaled') and plt.axis('equal')? Mar 10, 2023 at 21:11
  • By default, it seems that plt.axis('equal') adjusts the vertical height of the axes to achieve equal scales along X and Y. Is it possible to have matplotlib adjust the horizontal size instead?
    – Sia
    May 11, 2023 at 4:11

'scaled' using plt

The best thing is to use:


As Saullo Castro said. Because with equal you can't change one axis limit without changing the other so if you want to fit all non-squared figures you will have a lot of white space.


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'equal' using ax

Alternatively, you can use the axes class.

fig = plt.figure()
ax = figure.add_subplot(111)
  • 1
    This is exactly what I was looking for. I think this answer definitely deserves more upvotes. Apr 8, 2020 at 14:16

There is, I'm sure, a way to set this directly as part of your plot command, but I don't remember the trick. To do it after the fact you can use the current axis and set it's aspect ratio with "set_aspect('equal')". In your example:

import matplotlib.pyplot as plt
plt.axes().set_aspect('equal', 'datalim')

I use this all the time and it's from the examples on the matplotlib website.

  • 2
    Try also pylab.gca().set_aspect('equal', 'box'). 'box' adjusts both of the axis limits (no whitespace around e.g. contourplot). 'datalim' adjusts only one of the limits (only x or y whitespace desappears). There is also 'box-forced' for exotic shared axis.
    – Juha
    Mar 20, 2013 at 12:19

Better plt.axis('scaling'), it works better if you want to modify the axes with xlim() and ylim().

  • I think it was meant to say 'scaled'. Which is already mentioned in other answers. Jun 13, 2019 at 12:29

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