Looking at the matplotlib documentation, it seems the standard way to add an AxesSubplot to a Figure is to use Figure.add_subplot:

from matplotlib import pyplot

fig = pyplot.figure()
ax = fig.add_subplot(1,1,1)
ax.hist( some params .... )

I would like to be able to create AxesSubPlot-like objects independently of the figure, so I can use them in different figures. Something like

fig = pyplot.figure()
histoA = some_axes_subplot_maker.hist( some params ..... )
histoA = some_axes_subplot_maker.hist( some other params ..... )
# make one figure with both plots
fig.add_subaxes(histo1, 211)
fig.add_subaxes(histo1, 212)
fig2 = pyplot.figure()
# make a figure with the first plot only
fig2.add_subaxes(histo1, 111)

Is this possible in matplotlib and if so, how can I do this?

Update: I have not managed to decouple creation of Axes and Figures, but following examples in the answers below, can easily re-use previously created axes in new or olf Figure instances. This can be illustrated with a simple function:

def plot_axes(ax, fig=None, geometry=(1,1,1)):
    if fig is None:
        fig = plt.figure()
    if ax.get_geometry() != geometry :
    ax = fig.axes.append(ax)
    return fig

5 Answers 5


Typically, you just pass the axes instance to a function.

For example:

import matplotlib.pyplot as plt
import numpy as np

def main():
    x = np.linspace(0, 6 * np.pi, 100)

    fig1, (ax1, ax2) = plt.subplots(nrows=2)
    plot(x, np.sin(x), ax1)
    plot(x, np.random.random(100), ax2)

    fig2 = plt.figure()
    plot(x, np.cos(x))


def plot(x, y, ax=None):
    if ax is None:
        ax = plt.gca()
    line, = ax.plot(x, y, 'go')
    ax.set_ylabel('Yabba dabba do!')
    return line

if __name__ == '__main__':

To respond to your question, you could always do something like this:

def subplot(data, fig=None, index=111):
    if fig is None:
        fig = plt.figure()
    ax = fig.add_subplot(index)

Also, you can simply add an axes instance to another figure:

import matplotlib.pyplot as plt

fig1, ax = plt.subplots()

fig2 = plt.figure()


Resizing it to match other subplot "shapes" is also possible, but it's going to quickly become more trouble than it's worth. The approach of just passing around a figure or axes instance (or list of instances) is much simpler for complex cases, in my experience...

  • 1
    +1 This is useful, but it seems to me that the axes are still coupled to the figures, and/or to some state in pyplot. I cannot really decouple the axis creation from the figure making and plotting following your example. Jun 10, 2011 at 17:17
  • Axes are fundamentally linked to a specific figure in matplotlib. There's no way around this. However, you can still completely "decouple the axis creation from the figure making and plotting" by just passing axes and figure objects around. I'm not quite sure I follow what you're wanting to do... Jun 10, 2011 at 17:41
  • 8
    adding axes instance to another figure (last example) doesn't work for me in Enthought 7.3-2 (matplotlib 1.1.0).
    – aaren
    Dec 7, 2012 at 12:53
  • 18
    @aaren - It's not working because the way the axes stack for a figure works has been changed in newer versions of matplotlib. Axes deliberately aren't supposed to be shared between different figures now. As a workaround, you could do this fig2._axstack.add(fig2._make_key(a), a), but it's hackish and likely to change in the future. It seems to work properly, but it may break some things. Dec 7, 2012 at 13:21
  • 5
    10 years later and I still wonder why I insist on using matplotlib Apr 6, 2021 at 9:06

The following shows how to "move" an axes from one figure to another. This is the intended functionality of @JoeKington's last example, which in newer matplotlib versions is not working anymore, because axes cannot live in several figures at once.

You would first need to remove the axes from the first figure, then append it to the next figure and give it some position to live in.

import matplotlib.pyplot as plt

fig1, ax = plt.subplots()

fig2 = plt.figure()

dummy = fig2.add_subplot(111)

  • 1
    small addition: when plt.show() is replaced by fig2.savefig('out.png', dpi=300) the positioning is messed up due to the dpi keyword. This can be avoided by setting the final dpi when ax is initialized: fig1, ax = plt.subplots(dpi=300) Nov 7, 2017 at 9:25
  • In my Python shell, it doesn't look like this line does anything: fig2.axes.append(ax)
    – Spirko
    Jan 7, 2018 at 16:47
  • 1
    @ImportanceOfBeingErnest Yes; I obtained my figure from a pickle. I apologise for omitting this important detail. I ended up setting 9 AxesSubplot to set_visible(False) and changing the position of the one I wanted to show only.
    – gerrit
    Aug 14, 2018 at 11:48
  • 1
    @gerrit Maybe you need this answer? Aug 14, 2018 at 12:04
  • 2
    @irene Note that this solution only moves the axes to a new figure, it does not set any of the transforms. So such issues are expected. Since it is discouraged to move artists between figures, better don't use this if you need reliable output. May 25, 2019 at 12:03

For line plots, you can deal with the Line2D objects themselves:

fig1 = pylab.figure()
ax1 = fig1.add_subplot(111)
lines = ax1.plot(scipy.randn(10))

fig2 = pylab.figure()
ax2 = fig2.add_subplot(111)
  • +1 Good example. It seems I cannot decouple the axes creation from figure creation, but I can grab the axes instance and pass it to new figures. Jun 12, 2011 at 7:40
  • 1
    Please note that this approach does not work anymore. See Joe Kington's comment from Dec 7 2012, on his answer above. Oct 4, 2016 at 12:06
  • 3
    ax2.add_line(lines[0]) results in RuntimeError: Can not put single artist in more than one figure (Python 3.7.0, matplotlib 2.2.2).
    – gerrit
    Aug 14, 2018 at 10:55

TL;DR based partly on Joe nice answer.

Opt.1: fig.add_subplot()

def fcn_return_plot():
    return plt.plot(np.random.random((10,)))
n = 4
fig = plt.figure(figsize=(n*3,2))
#fig, ax = plt.subplots(1, n,  sharey=True, figsize=(n*3,2)) # also works
for index in list(range(n)):
    fig.add_subplot(1, n, index + 1)
    plt.title(f"plot: {index}", fontsize=20) 

Opt.2: pass ax[index] to a function that returns ax[index].plot()

def fcn_return_plot_input_ax(ax=None):
    if ax is None:
        ax = plt.gca()
    return ax.plot(np.random.random((10,)))
n = 4
fig, ax = plt.subplots(1, n,  sharey=True, figsize=(n*3,2))
for index in list(range(n)):
    ax[index].set_title(f"plot: {index}", fontsize=20)

Outputs respect. enter image description here enter image description here

Note: Opt.1 plt.title() changed in opt.2 to ax[index].set_title(). Find more Matplotlib Gotchas in Van der Plas book.


To go deeper in the rabbit hole. Extending my previous answer, one could return a whole ax, and not ax.plot() only. E.g.

If dataframe had 100 tests of 20 types (here id):

dfA = pd.DataFrame(np.random.random((100,3)), columns = ['y1', 'y2', 'y3'])
dfB = pd.DataFrame(np.repeat(list(range(20)),5), columns = ['id'])
dfC = dfA.join(dfB)

And the plot function (this is the key of this whole answer):

def plot_feature_each_id(df, feature, id_range=[], ax=None, legend_bool=False):
    feature = df[feature]
    if not len(id_range): id_range=set(df['id'])
    legend_arr = []
    for k in id_range:
        mask = (df['id'] == k)
        legend_arr.append(f"id: {k}")
    if legend_bool: ax.legend(legend_arr)
    return ax

We can achieve:

feature_arr = dfC.drop('id',1).columns
id_range= np.random.randint(len(set(dfC.id)), size=(10,))
n = len(feature_arr)
fig, ax = plt.subplots(1, n,  figsize=(n*6,4));
for i,k in enumerate(feature_arr):
    plot_feature_each_id(dfC, k, np.sort(id_range), ax[i], legend_bool=(i+1==n))
    ax[i].set_title(k, fontsize=20)
    ax[i].set_xlabel("test nr. (id)", fontsize=20)

enter image description here

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