Instead of the default "boxed" axis style I want to have only the left and bottom axis, i.e.:

+------+         |
|      |         |
|      |   --->  |
|      |         |
+------+         +-------

This should be easy, but I can't find the necessary options in the docs.


This is the suggested Matplotlib 3 solution from the official website HERE:

import numpy as np
import matplotlib.pyplot as plt

x = np.linspace(0, 2*np.pi, 100)
y = np.sin(x)

ax = plt.subplot(111)
ax.plot(x, y)

# Hide the right and top spines

# Only show ticks on the left and bottom spines


enter image description here

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  • 2
    This is the better than the accepted answer in newer versions of matplotlib. – ffledgling Nov 26 '16 at 20:59
  • 4
    Additional question for beginners: where can you find this answer based on the Matplotlib API doc? If I go there: matplotlib.org/api/axes_api.html I don't see any reference to the spine object, and I wouldn't have guessed this keyword. – Eric Burel Jan 23 '19 at 16:46
  • @EricBurel I find the Matplotlib documentation poorly designed. I generally find it easier to understand its API from examples. This is why StackOverflow is so important! I wish the Matplotliob documentation was written with the clear and well-organized approach of Scipy and Numpy. – divenex Aug 17 at 13:09

Alternatively, this

def simpleaxis(ax):

seems to achieve the same effect on an axis without losing rotated label support.

(Matplotlib 1.0.1; solution inspired by this).

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[edit] matplotlib in now (2013-10) on version 1.3.0 which includes this

That ability was actually just added, and you need the Subversion version for it. You can see the example code here.

I am just updating to say that there's a better example online now. Still need the Subversion version though, there hasn't been a release with this yet.

[edit] Matplotlib 0.99.0 RC1 was just released, and includes this capability.

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(This is more of an extension comment, in addition to the comprehensive answers here.)

Note that we can hide each of these three elements independently of each other:

  • To hide the border (aka "spine"): ax.set_frame_on(False) or ax.spines['top'].set_visible(False)

  • To hide the ticks: ax.tick_params(top=False)

  • To hide the labels: ax.tick_params(labeltop=False)

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  • nice summary of possibilities. +1 – loved.by.Jesus Apr 28 at 8:34

If you don't need ticks and such (e.g. for plotting qualitative illustrations) you could also use this quick workaround:

Make the axis invisible (e.g. with plt.gca().axison = False) and then draw them manually with plt.arrow.

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  • 1
    this seems to remove the spines but leave the tick marks in place. Any idea how to remove the ticks as well? – Rob Young May 18 '11 at 11:55
  • 2
    @Rob: You are right, I actually used a different solution in the script I was thinking of. I changed my answer, this should now work, but in general the accepted solution above is better. – nikow May 18 '11 at 18:44

Library Seaborn has this built in with function despine().

Just add:

import seaborn as sns

Now create your graph. And add at the end:


If you look at some of the default parameter values of the function it removes the top and right spine and keeps the bottom and left spine:

sns.despine(top=True, right=True, left=False, bottom=False)

Check out further documentation here: https://seaborn.pydata.org/generated/seaborn.despine.html

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If you need to remove it from all your plots, you can remove spines in style settings (style sheet or rcParams). E.g:

import matplotlib as mpl

mpl.rcParams['axes.spines.right'] = False
mpl.rcParams['axes.spines.top'] = False

If you want to remove all spines:

mpl.rcParams['axes.spines.left'] = False
mpl.rcParams['axes.spines.right'] = False
mpl.rcParams['axes.spines.top'] = False
mpl.rcParams['axes.spines.bottom'] = False
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