# How to share x axes of two subplots after they have been created

I'm trying to share two subplots axes, but I need to share the x axis after the figure was created. E.g. I create this figure:

``````import numpy as np
import matplotlib.pyplot as plt

t = np.arange(1000)/100.
x = np.sin(2*np.pi*10*t)
y = np.cos(2*np.pi*10*t)

fig = plt.figure()
ax1 = plt.subplot(211)
plt.plot(t,x)
ax2 = plt.subplot(212)
plt.plot(t,y)

# some code to share both x axes

plt.show()
``````

Instead of the comment I want to insert some code to share both x axes. How do I do this? There are some relevant sounding attributes `_shared_x_axes` and `_shared_x_axes` when I check to figure axis (`fig.get_axes()`) but I don't know how to link them.

The usual way to share axes is to create the shared properties at creation. Either

``````fig=plt.figure()
ax1 = plt.subplot(211)
ax2 = plt.subplot(212, sharex = ax1)
``````

or

``````fig, (ax1, ax2) = plt.subplots(nrows=2, sharex=True)
``````

Sharing the axes after they have been created should therefore not be necessary.

However if for any reason, you need to share axes after they have been created (actually, using a different library which creates some subplots, like here might be a reason), there would still be a solution:

Using

``````ax1.get_shared_x_axes().join(ax1, ax2)
``````

creates a link between the two axes, `ax1` and `ax2`. In contrast to the sharing at creation time, you will have to set the xticklabels off manually for one of the axes (in case that is wanted).

A complete example:

``````import numpy as np
import matplotlib.pyplot as plt

t= np.arange(1000)/100.
x = np.sin(2*np.pi*10*t)
y = np.cos(2*np.pi*10*t)

fig=plt.figure()
ax1 = plt.subplot(211)
ax2 = plt.subplot(212)

ax1.plot(t,x)
ax2.plot(t,y)

ax1.get_shared_x_axes().join(ax1, ax2)
ax1.set_xticklabels([])
# ax2.autoscale() ## call autoscale if needed

plt.show()
``````

``````axes[0].get_shared_x_axes().join(axes[0], *axes[1:])
``````
• This is useful to connect select subplots. For example, a figure with 4 subplots: two time series and two histograms. This allows you to selectively link the time series. Sep 23, 2017 at 23:51
• API docs for the Grouper object: matplotlib.org/2.0.2/api/… Oct 25, 2017 at 12:06
• Ohh, I just figured out how to unshare an axis (which can be useful in a large grid) - on that axis, do `g = ax.get_shared_y_axes(); g.remove(a) for a in g.get_siblings(ax)]`. Thanks for the starting point! Mar 2, 2018 at 7:12
• @naught101 You can just call `ax2.autoscale()`. Mar 16, 2018 at 1:27
• The `.join` method (`matplotlib.cbook.GrouperView.join`) is deprecated since version 3.6. How would you do without it ? Jan 26, 2023 at 8:46

As of Matplotlib v3.3 there now exist `Axes.sharex`, `Axes.sharey` methods:

``````ax1.sharex(ax2)
ax1.sharey(ax3)
``````
• note: you can only use `Axes.sharex` oncer per object. on the second call it errors out. so if you need to call it more than once use the more complex `Axes.get_shared_x_axes().join()`. Mar 31, 2022 at 16:28
• To get around this issue of only being able to call it once you could instead change the above example by doing what @mins suggested, and "Call ax2.sharey(ax1), ax3.sharey(ax1), and so on if required." Jan 31 at 23:10

Just to add to ImportanceOfBeingErnest's answer above:

If you have an entire `list` of axes objects, you can pass them all at once and have their axes shared by unpacking the list like so:

``````ax_list = [ax1, ax2, ... axn] #< your axes objects
ax_list[0].get_shared_x_axes().join(ax_list[0], *ax_list)
``````

The above will link all of them together. Of course, you can get creative and sub-set your `list` to link only some of them.

Note:

In order to have all `axes` linked together, you do have to include the first element of the `axes_list` in the call, despite the fact that you are invoking `.get_shared_x_axes()` on the first element to start with!

So doing this, which would certainly appear logical:

``````ax_list[0].get_shared_x_axes().join(ax_list[0], *ax_list[1:])
``````

... will result in linking all `axes` objects together except the first one, which will remain entirely independent from the others.

• For everyone having trouble: add "autoscale", if it does not work (see the answers above) Jan 19, 2022 at 15:56
• The `.join` method (`matplotlib.cbook.GrouperView.join`) is deprecated since version 3.6. How would you do without it ? Jan 26, 2023 at 8:47
• I can't help I'm afraid as I'm still on an earlier version. But I encourage you to post your solution, if you find one. Jan 27, 2023 at 11:00

Function `join` has been deprecated and will be removed soon. Continuing with this function is not recommended.

You can use the method suggested by iacob but, as commented by Trevor Boyd Smith, `sharex` and `sharey` can only be called once on the same object.

Thus the solution is to select one single axis as the argument of calls from multiple axes which need to be associated with the first one, e.g. to set the same y-scale for axes `ax1`, `ax2` and `ax3`:

• Select `ax1` as the argument for other calls.
• Call `ax2.sharey(ax1)`, `ax3.sharey(ax1)`, and so on if required.
• Thanks! Currently one cannot make all data points appear with this method, i.e. the previous .join no longer works.
– msch
Nov 27, 2023 at 14:58

Since the `.get_shared_x_axes().join()` method is deprecated, here is a function using `ax.sharex()` that also removes the tick labels of inner plots (as using `sharex=True` at construction time does) and works across figures:

``````def share_axes(axes, sharex=True, sharey=True):
if isinstance(axes, np.ndarray):
axes = axes.flat  # from plt.subplots
elif isinstance(axes, dict):
axes = list(axes.values())  # from plt.subplot_mosaic
else:
axes = list(axes)
ax0 = axes[0]
for ax in axes:
if sharex:
ax.sharex(ax0)
if not ax.get_subplotspec().is_last_row():
ax.tick_params(labelbottom=False)
if sharey:
ax.sharey(ax0)
if not ax.get_subplotspec().is_first_col():
ax.tick_params(labelleft=False)
``````

Usage:

``````import matplotlib.pyplot as plt
import numpy as np

fig1, axes1 = plt.subplots(2, 2, figsize=(3, 3))
fig2, axes2 = plt.subplots(2, 2, figsize=(3, 3))

axes = [*axes1.flat, *axes2.flat]

for ax in axes:
ax.imshow(np.random.randint(0, 255, size=(10, 10, 3)))

share_axes(axes)

plt.show()
``````