To add a legend to a matplotlib plot, one simply runs legend().

How to remove a legend from a plot?

(The closest I came to this is to run legend([]) in order to empty the legend from data. But that leaves an ugly white rectangle in the upper right corner.)

11 Answers 11


As of matplotlib v1.4.0rc4, a remove method has been added to the legend object.




legend = ax.legend(...)

See here for the commit where this was introduced.

  • Doesn't work for matplotlib 3.7.1
    – irene
    Commented May 9, 2023 at 5:55
  • @irene sorry to hear it is not working for you. This is still used in the unit test as of 3.7.1 and it worked when I just tried it: github.com/matplotlib/matplotlib/blob/v3.7.1/lib/matplotlib/… What is the specific code that is not working for you?
    – naitsirhc
    Commented May 10, 2023 at 12:42
  • .remove() part. Will try to run it again and see.
    – irene
    Commented May 11, 2023 at 16:34

If you want to plot a Pandas dataframe and want to remove the legend, add legend=None as parameter to the plot command.

import pandas as pd
import numpy as np
import matplotlib.pyplot as plt

df2 = pd.DataFrame(np.random.randn(10, 5))

You could use the legend's set_visible method:


This is based on a answer provided to me in response to a similar question I had some time ago here

(Thanks for that answer Jouni - I'm sorry I was unable to mark the question as answered... perhaps someone who has the authority can do so for me?)

  • For some reason, I get here "No artists with labels found to put in legend. Note that artists whose label start with an underscore are ignored when legend() is called with no argument"
    – sdbbs
    Commented Jul 28, 2023 at 0:12

if you call pyplot as plt

frameon=False is to remove the border around the legend

and '' is passing the information that no variable should be in the legend

import matplotlib.pyplot as plt

you have to add the following lines of code:

ax = gca()
ax.legend_ = None

gca() returns the current axes handle, and has that property legend_

  • 1
    Thank you, that seems to work. (But what a horrible interface...) I suggest to replace draw() by show(). Or is there a particular advantage in using draw? Commented Apr 20, 2011 at 19:10
  • show() would be OK if the graph update were the last command of a program. draw() is fine, as it is the general graph update command. You might for instance want to prompt the user for some input in a terminal after updating the graph, which cannot be done with the blocking show(). Commented Apr 20, 2011 at 20:19
  • Right. Thanks for the answer. Now I agree that draw is more appropriate (but I've always used show to update my graphs...). Commented Apr 20, 2011 at 20:31

According to the information from @naitsirhc, I wanted to find the official API documentation. Here are my finding and some sample code.

  1. I created a matplotlib.Axes object by seaborn.scatterplot().
  2. The ax.get_legend() will return a matplotlib.legend.Legend instance.
  3. Finally, you call .remove() function to remove the legend from your plot.
ax = sns.scatterplot(......)
_lg = ax.get_legend()

If you check the matplotlib.legend.Legend API document, you won't see the .remove() function.

The reason is that the matplotlib.legend.Legend inherited the matplotlib.artist.Artist. Therefore, when you call ax.get_legend().remove() that basically call matplotlib.artist.Artist.remove().

In the end, you could even simplify the code into two lines.

ax = sns.scatterplot(......)

I made a legend by adding it to the figure, not to an axis (matplotlib 2.2.2). To remove it, I set the legends attribute of the figure to an empty list:

import matplotlib.pyplot as plt

fig = plt.figure()
ax1 = fig.add_subplot(111)
ax2 = ax1.twinx()

ax1.plot(range(10), range(10, 20), label='line 1')
ax2.plot(range(10), range(30, 20, -1), label='line 2')


fig.legends = []

  • 1
    This should be the accepted answer to the question in the title, which references a matplotlib figure. The other answers tell you how to remove the legend from a matplotlib axis, which is not the same thing. Commented May 16, 2023 at 21:38

If you are not using fig and ax plot objects you can do it like so:

import matplotlib.pyplot as plt

# do plot specifics
  • 5
    Leaves the legend as an empty box
    – chasmani
    Commented Apr 29, 2021 at 8:45

Here is a more complex example of legend removal and manipulation with matplotlib and seaborn dealing with subplots:

From seaborn, get the Axes object created by sns.<some_plot>() and do ax.get_legend().remove() as indicated by @naitsirhc. The following example also shows how to put the legend aside, and how to deal in a context of subplots.

# imports
import seaborn as sns
import matplotlib.pyplot as plt

# get data
tips = sns.load_dataset("tips")

# subplots
fig, axes = plt.subplots(1, 2, sharex=True, sharey=True, figsize=(12,6)) 
fig.suptitle('Example of legend manipulations on subplots with seaborn')

g0 = sns.pointplot(ax=axes[0], data=tips, x="day", y="total_bill", hue="size")
g0.set(title="Pointplot with no legend")
g0.get_legend().remove() # <<< REMOVE LEGEND HERE 

g1 = sns.swarmplot(ax=axes[1], data=tips, x="day", y="total_bill", hue="size")
g1.set(title="Swarmplot with legend aside")
# change legend position: https://www.statology.org/seaborn-legend-position/
g1.legend(bbox_to_anchor=(1.02, 1), loc='upper left', borderaxespad=0)

Example of legend manipulations on subplots with seaborn


If you are using seaborn you can use the parameter legend. Even if you are ploting more than once in the same figure. Example with some df

import seaborn as sns

# Will display legend
ax1 = sns.lineplot(x='cars', y='miles', hue='brand', data=df)

# No legend displayed
ax2 = sns.lineplot(x='cars', y='miles', hue='brand', data=df, legend=None)

you could simply do:

axs[n].legend(loc='upper left',ncol=2,labelspacing=0.01)

for i in [4,5,6,7,8,9,10,11,12,13,14,15,16,17,18,19]: axs[i].legend([])

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