I have the following dataset:

x = [0, 1, 2, 3, 4]
y = [ [0, 1, 2, 3, 4],
      [5, 6, 7, 8, 9],
      [9, 8, 7, 6, 5] ]

Now I plot it with:

import matplotlib.pyplot as plt
plt.plot(x, y)

However, I want to label the 3 y-datasets with this command, which raises an error when .legend() is called:

lineObjects = plt.plot(x, y, label=['foo', 'bar', 'baz'])

File "./plot_nmos.py", line 33, in <module>
AttributeError: 'list' object has no attribute 'startswith'

When I inspect the lineObjects:

>>> lineObjects[0].get_label()
['foo', 'bar', 'baz']
>>> lineObjects[1].get_label()
['foo', 'bar', 'baz']
>>> lineObjects[2].get_label()
['foo', 'bar', 'baz']


Is there an elegant way to assign multiple labels by just using the .plot() method?

9 Answers 9


You can iterate over your line objects list, so labels are individually assigned. An example with the built-in python iter function:

lineObjects = plt.plot(x, y)
plt.legend(iter(lineObjects), ('foo', 'bar', 'baz'))`

Edit: after updating to matplotlib 1.1.1, it looks like the plt.plot(x, y), with y as a list of lists (as provided by the author of the question), doesn't work anymore. The one step plotting without iteration over the y arrays is still possible thought after passing y as numpy.array (assuming (numpy)[http://numpy.scipy.org/] as been previously imported).

In this case, use plt.plot(x, y) (if the data in the 2D y array are arranged as columns [axis 1]) or plt.plot(x, y.transpose()) (if the data in the 2D y array are arranged as rows [axis 0])

Edit 2: as pointed by @pelson (see commentary below), the iter function is unnecessary and a simple plt.legend(lineObjects, ('foo', 'bar', 'baz')) works perfectly

  • This doesn't work for the user (the x and y's provided cannot be plotted at the same time without an iteration step). Even if the plotting did work, assuming the lineObjects is a list (or tuple etc.), the iter function would be unnecessary.
    – pelson
    Jul 16, 2012 at 13:34
  • @pelson indeed, it looks like it doesn't work with the new matplotlib release. However, if x and y are numpy arrays, you can still plot them in one step with plot(x, y.transpose()). In this case, the syntax with the iter function is still valid.
    – gcalmettes
    Jul 16, 2012 at 15:18
  • Your right, I didn't know a simple transpose would solve it. (numpy arrays can be transposed with .T by the way i.e. y.T). However, I still stand by the claim that your iter function is unnecessary here (although obviously it still works).
    – pelson
    Jul 16, 2012 at 16:48
  • 1
    @pelson you're right, a simple legend(lineObjects, ('foo', 'bar', 'baz')) perfectly works. I don't know why I added the iter function here ... thanks
    – gcalmettes
    Jul 16, 2012 at 18:03

It is not possible to plot those two arrays agains each other directly (with at least version 1.1.1), therefore you must be looping over your y arrays. My advice would be to loop over the labels at the same time:

import matplotlib.pyplot as plt

x = [0, 1, 2, 3, 4]
y = [ [0, 1, 2, 3, 4], [5, 6, 7, 8, 9], [9, 8, 7, 6, 5] ]
labels = ['foo', 'bar', 'baz']

for y_arr, label in zip(y, labels):
    plt.plot(x, y_arr, label=label)


Edit: @gcalmettes pointed out that as numpy arrays, it is possible to plot all the lines at the same time (by transposing them). See @gcalmettes answer & comments for details.


I came over the same problem and now I found a solution that is most easy! Hopefully that's not too late for you. No iterator, just assign your result to a structure...

from numpy import *
from matplotlib.pyplot import *
from numpy.random import *

a = rand(4,4)
>>> array([[ 0.33562406,  0.96967617,  0.69730654,  0.46542408],
   [ 0.85707323,  0.37398595,  0.82455736,  0.72127002],
   [ 0.19530943,  0.4376796 ,  0.62653007,  0.77490795],
   [ 0.97362944,  0.42720348,  0.45379479,  0.75714877]])

[b,c,d,e] = plot(a)
legend([b,c,d,e], ["b","c","d","e"], loc=1)

Looks like this: enter image description here


The best current solution is:

lineObjects = plt.plot(x, y)  # y describes 3 lines
plt.legend(['foo', 'bar', 'baz'])

You can give the labels while plotting the curves

import pylab as plt

x = [0, 1, 2, 3, 4]
y = [ [0, 1, 2, 3, 4], [5, 6, 7, 8, 9], [9, 8, 7, 6, 5] ]
labels=['foo', 'bar', 'baz']

# loop over data, labels and colors
for i in range(len(y)):


enter image description here

  • Stylistically, it is probably more pythonic to iterate over the y lists directly, zipping other lists at the same time (see my answer). If you really must, then rather than doing a range(len(...)) it is preferable to use enumerate(...). You still got a +1 though :-)
    – pelson
    Jul 15, 2012 at 15:56
  • Thanks for pointing this out. In this case izip, zip or enumerate do make more sense.
    – imsc
    Jul 16, 2012 at 5:12

In case of numpy matrix plot assign multiple legends at once for each column

I would like to answer this question based on plotting a matrix that has two columns.

Say you have a 2 column matrix Ret

then one may use this code to assign multiple labels at once

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

plt.legend(['Bond Ret','Equity Ret'], loc=0)

I hope this helps


This problem comes up for me often when I have a single set of x values and multiple y values in the columns of an array. I really don't want to plot the data in a loop, and multiple calls to ax.legend/plt.legend are not really an option, since I want to plot other stuff, usually in an equally annoying format.

Unfortunately, plt.setp is not helpful here. In newer versions of matplotlib, it just converts your entire list/tuple into a string, and assigns the whole thing as a label to all the lines.

I've therefore made a utility function to wrap calls to ax.plot/plt.plot in:

def set_labels(artists, labels):
    for artist, label in zip(artists, labels):

You can call it something like

x = np.arange(5)
y = np.random.ranint(10, size=(5, 3))

fig, ax = plt.subplots()
set_labels(ax.plot(x, y), 'ABC')

This way you get to specify all your normal artist parameters to plot, without having to see the loop in your code. An alternative is to put the whole call to plot into a utility that just unpacks the labels, but that would require a lot of duplication to figure out how to parse multiple datasets, possibly with different numbers of columns, and spread out across multiple arguments, keyword or otherwise.


I used the following to show labels for a dataframe without using the dataframe plot:

lines_ = plot(df)
legend(lines_, df.columns) # df.columns is a list of labels

If you're using a DataFrame, you can also iterate over the columns of the data you want to plot:

# Plot figure
fig, ax = plt.subplots(figsize=(5,5))
# Data
data = data
# Plot
for i in data.columns:
    _ = ax.plot(data[i], label=i)
    _ = ax.legend() 
  • There is no need to call ax.legend() for each individual column. As the label is set during plotting a single call of ax.legend() right before plt.show() is enough.
    – jrast
    Dec 3, 2021 at 8:15

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