# how do I make a single legend for many subplots with matplotlib?

I am plotting the same type of information, but for different countries, with multiple subplots with matplotlib. That is, I have 9 plots on a 3x3 grid, all with the same for lines (of course, different values per line).

However, I have not figured out how to put a single legend (since all 9 subplots have the same lines) on the figure just once.

How do I do that?

There is also a nice function get_legend_handles_labels() you can call on the last axis (if you iterate over them) that would collect everything you need from label= arguments:

handles, labels = ax.get_legend_handles_labels()
fig.legend(handles, labels, loc='upper center')

• This should be the top answer. – naught101 Dec 4 '17 at 7:28
• This is indeed a much more useful answer! It worked just like that in a more complicated case for me. – gmaravel Jun 19 '18 at 9:02
• perfect answer! – Dorgham Dec 10 '18 at 22:17
• For others confused as to which choice to go with: this answer easily allows each ax or subplot to have the same data but only one legend for all of them. The currently accepted answer created one legend but repeated labels for the same data in two or more subplots. – gwg Feb 21 at 18:23
• How do I remove the legend for the subplots? – BND Apr 21 at 13:18

figlegend may be what you're looking for: http://matplotlib.org/api/pyplot_api.html#matplotlib.pyplot.figlegend

Another example:

plt.figlegend( lines, labels, loc = 'lower center', ncol=5, labelspacing=0. )


or:

fig.legend( lines, labels, loc = (0.5, 0), ncol=5 )

• I know the lines which I want to put in the legend, but how do I get the lines variable to put in the argument for legend ? – patapouf_ai Apr 10 '17 at 12:51
• @patapouf_ai lines is a list of results that are returned from axes.plot() (i.e., each axes.plot or similar routine returns a "line"). See also the linked example. – user707650 Apr 10 '17 at 20:13
• You included the OOP interface. Have an upvote. – ifly6 Sep 30 at 21:26

You just have to ask for the legend once, outside of your loop.

For example, in this case I have 4 subplots, with the same lines, and a single legend.

from matplotlib.pyplot import *

ficheiros = ['120318.nc', '120319.nc', '120320.nc', '120321.nc']

fig = figure()
fig.suptitle('concentration profile analysis')

for a in range(len(ficheiros)):

xticks(range(8), ['0h','3h','6h','9h','12h','15h','18h','21h'])
ax.set_xlabel('time (hours)')
ax.set_ylabel('CONC ($\mu g. m^{-3}$)')

for index in range(len(level)):
ax.plot(conc,label=str(level[index])+'m')

# it will place the legend on the outer right-hand side of the last axes

show()

• figlegend, as sugested by Evert, seems to be a much better solution ;) – carla Mar 23 '12 at 11:06
• the problem of fig.legend() is that it requires identification for all the lines (plots)... as, for each subplot, I am using a loop to generate the lines, the only solution I figured out to overcome this is to create an empty list before the second loop, and then append the lines as they are being created... Then I use this list as an argument to the fig.legend() function. – carla Mar 23 '12 at 12:06
• A similar question here – emmmphd Aug 2 '17 at 7:34
• What is dados there ? – Shyamkkhadka Jan 30 '18 at 14:48
• @Shyamkkhadka, in my original script dados was a dataset from a netCDF4 file (for each of the files defined in the list ficheiros). In each loop, a different file is read and a subplot is added to the figure. – carla Jan 31 '18 at 11:08

For the automatic positioning of a single legend in a figure with many axes, like those obtained with subplots(), the following solution works really well:

plt.legend( lines, labels, loc = 'lower center', bbox_to_anchor = (0,-0.1,1,1),
bbox_transform = plt.gcf().transFigure )


With bbox_to_anchor and bbox_transform=plt.gcf().transFigure you are defining a new bounding box of the size of your figureto be a reference for loc. Using (0,-0.1,1,1) moves this bouding box slightly downwards to prevent the legend to be placed over other artists.

OBS: use this solution AFTER you use fig.set_size_inches() and BEFORE you use fig.tight_layout()

• Or simpy loc='upper center', bbox_to_anchor=(0.5, 0), bbox_transform=plt.gcf().transFigure and it will not overlap for sure. – Davor Josipovic Aug 7 '16 at 11:45
• I'm still not sure why, but Evert's solution didn't work for me--the legend kept getting cut off. This solution (along with davor's comment) worked very cleanly--legend was placed as expected and fully visible. Thanks! – sudo make install Dec 11 '16 at 13:41

I have noticed that no answer display an image with a single legend referencing many curves in different subplots, so I have to show you one... to make you curious...

Now, you want to look at the code, don't you?

from numpy import linspace
import matplotlib.pyplot as plt

# Calling the axes.prop_cycle returns an itertoools.cycle

color_cycle = plt.rcParams['axes.prop_cycle']()

# I need some curves to plot

x = linspace(0, 1, 51)
f1 = x*(1-x)   ; lab1 = 'x - x x'
f2 = 0.25-f1   ; lab2 = '1/4 - x + x x'
f3 = x*x*(1-x) ; lab3 = 'x x - x x x'
f4 = 0.25-f3   ; lab4 = '1/4 - x x + x x x'

# let's plot our curves (note the use of color cycle, otherwise the curves colors in
# the two subplots will be repeated and a single legend becomes difficult to read)
fig, (a13, a24) = plt.subplots(2)

a13.plot(x, f1, label=lab1, **next(color_cycle))
a13.plot(x, f3, label=lab3, **next(color_cycle))
a24.plot(x, f2, label=lab2, **next(color_cycle))
a24.plot(x, f4, label=lab4, **next(color_cycle))

# so far so good, now the trick

lines_labels = [ax.get_legend_handles_labels() for ax in fig.axes]
lines, labels = [sum(lol, []) for lol in zip(*lines_labels)]

# finally we invoke the legend (that you probably would like to customize...)

fig.legend(lines, labels)
plt.show()


The two lines

lines_labels = [ax.get_legend_handles_labels() for ax in fig.axes]
lines, labels = [sum(lol, []) for lol in zip(*lines_labels)]


deserve an explanation — to this aim I have encapsulated the tricky part in a function, just 4 lines of code but heavily commented

def fig_legend(fig, **kwdargs):

# generate a sequence of tuples, each contains
#  - a list of handles (lohand) and
#  - a list of labels (lolbl)
tuples_lohand_lolbl = (ax.get_legend_handles_labels() for ax in fig.axes)
# e.g. a figure with two axes, ax0 with two curves, ax1 with one curve
# yields:   ([ax0h0, ax0h1], [ax0l0, ax0l1]) and ([ax1h0], [ax1l0])

# legend needs a list of handles and a list of labels,
# so our first step is to transpose our data,
# generating two tuples of lists of homogeneous stuff(tolohs), i.e
# we yield ([ax0h0, ax0h1], [ax1h0]) and ([ax0l0, ax0l1], [ax1l0])
tolohs = zip(*tuples_lohand_lolbl)

# finally we need to concatenate the individual lists in the two
# lists of lists: [ax0h0, ax0h1, ax1h0] and [ax0l0, ax0l1, ax1l0]
# a possible solution is to sum the sublists - we use unpacking
handles, labels = (sum(list_of_lists, []) for list_of_lists in tolohs)

# call fig.legend with the keyword arguments, return the legend object

return fig.legend(handles, labels, **kwdargs)


PS I recognize that sum(list_of_lists, []) is a really inefficient method to flatten a list of lists but ① I love its compactness, ② usually is a few curves in a few subplots and ③ Matplotlib and efficiency? ;-)

While rather late to the game, I'll give another solution here as this is still one of the first links to show up on google. Using matplotlib 2.2.2, this can be achieved using the gridspec feature. In the example below the aim is to have four subplots arranged in a 2x2 fashion with the legend shown at the bottom. A 'faux' axis is created at the bottom to place the legend in a fixed spot. The 'faux' axis is then turned off so only the legend shows. Result: https://i.stack.imgur.com/5LUWM.png.

import matplotlib.pyplot as plt
import matplotlib.gridspec as gridspec

#Gridspec demo
fig = plt.figure()
fig.set_size_inches(8,9)
fig.set_dpi(100)

rows   = 17 #the larger the number here, the smaller the spacing around the legend
start1 = 0
end1   = int((rows-1)/2)
start2 = end1
end2   = int(rows-1)

gspec = gridspec.GridSpec(ncols=4, nrows=rows)

axes = []

line, = axes[0].plot([0,1],[0,1],'b')           #add some data
axes[-1].legend((line,),('Test',),loc='center') #create legend on bottommost axis
axes[-1].set_axis_off()                         #don't show bottommost axis

fig.tight_layout()
plt.show()


if you are using subplots with bar charts, with different colour for each bar. it may be faster to create the artefacts yourself using mpatches

Say you have four bars with different colours as r m c k you can set the legend as follows

import matplotlib.patches as mpatches
import matplotlib.pyplot as plt
labels = ['Red Bar', 'Magenta Bar', 'Cyan Bar', 'Black Bar']

#####################################
# insert code for the subplots here #
#####################################

# now, create an artist for each color
red_patch = mpatches.Patch(facecolor='r', edgecolor='#000000') #this will create a red bar with black borders, you can leave out edgecolor if you do not want the borders
black_patch = mpatches.Patch(facecolor='k', edgecolor='#000000')
magenta_patch = mpatches.Patch(facecolor='m', edgecolor='#000000')
cyan_patch = mpatches.Patch(facecolor='c', edgecolor='#000000')
fig.legend(handles = [red_patch, magenta_patch, cyan_patch, black_patch],labels=labels,
loc="center right",

• +1 The best! I used it in this way adding directly to the plt.legend to have one legend for all my subplots – User Nov 8 at 8:54
In fact, the overlaps are caused by fig.tight_layout(), which changes the subplots' layout without considering the figure legend. However, fig.tight_layout() is necessary.
In order to avoid the overlaps, we can tell fig.tight_layout() to leave spaces for the figure's legend by fig.tight_layout(rect=(0,0,1,0.9)).