227

Suppose I have the following code that plots something very simple using pandas:

import pandas as pd
values = [[1, 2], [2, 5]]
df2 = pd.DataFrame(values, columns=['Type A', 'Type B'], 
                   index=['Index 1', 'Index 2'])
df2.plot(lw=2, colormap='jet', marker='.', markersize=10, 
         title='Video streaming dropout by category')

Output

How do I easily set x and y-labels while preserving my ability to use specific colormaps? I noticed that the plot() wrapper for pandas DataFrames doesn't take any parameters specific for that.

0
375

The df.plot() function returns a matplotlib.axes.AxesSubplot object. You can set the labels on that object.

ax = df2.plot(lw=2, colormap='jet', marker='.', markersize=10, title='Video streaming dropout by category')
ax.set_xlabel("x label")
ax.set_ylabel("y label")

enter image description here

Or, more succinctly: ax.set(xlabel="x label", ylabel="y label").

Alternatively, the index x-axis label is automatically set to the Index name, if it has one. so df2.index.name = 'x label' would work too.

6
  • 76
    is there a particular reason why x and y labels can't be added as arguments to pd.plot()? Given the additional concision of pd.plot() over plt.plot() it seems it would make sense to make it even more succinct instead of having to call ax.set_ylabel(). – Chrispy Apr 30 '14 at 1:39
  • When I did ax.set_ylabel("y label"), it returns an error 'list' object is not callable. Any idea? – Ledger Yu Sep 5 '17 at 9:44
  • Interesting. I don't know if it's version-dependant but I'll have to do ax.axes.set_ylabel("y label"). – Ledger Yu Sep 5 '17 at 10:00
  • 4
    I think you could put the ax.set(xlabel='...) higher in this answer as it might be missed past the graph. It really is the most succinct approach to set both axes, which is the common usecase. – poulter7 Oct 10 '17 at 2:55
  • How do you set the location? – Odisseo Oct 3 '19 at 23:22
49

You can use do it like this:

import matplotlib.pyplot as plt 
import pandas as pd

plt.figure()
values = [[1, 2], [2, 5]]
df2 = pd.DataFrame(values, columns=['Type A', 'Type B'], 
                   index=['Index 1', 'Index 2'])
df2.plot(lw=2, colormap='jet', marker='.', markersize=10,
         title='Video streaming dropout by category')
plt.xlabel('xlabel')
plt.ylabel('ylabel')
plt.show()

Obviously you have to replace the strings 'xlabel' and 'ylabel' with what you want them to be.

1
  • Also note, you have to call plt.xlabel() etc. after df.plot(), not before, because otherwise you get two plots - the calls will modify a "previous" plot. Same thing goes for plt.title(). – Tomasz Gandor Apr 2 '20 at 17:00
31

If you label the columns and index of your DataFrame, pandas will automatically supply appropriate labels:

import pandas as pd
values = [[1, 2], [2, 5]]
df = pd.DataFrame(values, columns=['Type A', 'Type B'], 
                  index=['Index 1', 'Index 2'])
df.columns.name = 'Type'
df.index.name = 'Index'
df.plot(lw=2, colormap='jet', marker='.', markersize=10, 
        title='Video streaming dropout by category')

enter image description here

In this case, you'll still need to supply y-labels manually (e.g., via plt.ylabel as shown in the other answers).

3
  • currently, that 'automatic supply from DataFrame' doesn't work. I just tried it (pandas version 0.16.0, matplotlib 1.4.3) and the plot generates correctly, but with no labels on the axes. – szeitlin Apr 29 '15 at 18:22
  • 1
    @szeitlin could you please file a bug report on the pandas github page? github.com/pydata/pandas/issues – shoyer Apr 29 '15 at 21:28
  • you know what, today at least the xlabel is working. maybe there was something strange about the dataframe I was using yesterday (?). if I can reproduce it, I will file it! – szeitlin Apr 30 '15 at 21:27
23

It is possible to set both labels together with axis.set function. Look for the example:

import pandas as pd
import matplotlib.pyplot as plt
values = [[1,2], [2,5]]
df2 = pd.DataFrame(values, columns=['Type A', 'Type B'], index=['Index 1','Index 2'])
ax = df2.plot(lw=2,colormap='jet',marker='.',markersize=10,title='Video streaming dropout by category')
# set labels for both axes
ax.set(xlabel='x axis', ylabel='y axis')
plt.show()

enter image description here

1
  • 3
    I like the .set(xlabel='x axis', ylabel='y axis') solution because it lets me put it all in one line, unlike the set_xlabel and set_ylabel plot methods. I wonder why they all (including the set method, by the way) don't return the plot object or at least something inherited from it. – fault-tolerant Oct 28 '17 at 9:02
14

For cases where you use pandas.DataFrame.hist:

plt = df.Column_A.hist(bins=10)

Note that you get an ARRAY of plots, rather than a plot. Thus to set the x label you will need to do something like this

plt[0][0].set_xlabel("column A")
12

what about ...

import pandas as pd
import matplotlib.pyplot as plt

values = [[1,2], [2,5]]

df2 = pd.DataFrame(values, columns=['Type A', 'Type B'], index=['Index 1','Index 2'])

(df2.plot(lw=2,
          colormap='jet',
          marker='.',
          markersize=10,
          title='Video streaming dropout by category')
    .set(xlabel='x axis',
         ylabel='y axis'))

plt.show()
3

pandas uses matplotlib for basic dataframe plots. So, if you are using pandas for basic plot you can use matplotlib for plot customization. However, I propose an alternative method here using seaborn which allows more customization of the plot while not going into the basic level of matplotlib.

Working Code:

import pandas as pd
import seaborn as sns
values = [[1, 2], [2, 5]]
df2 = pd.DataFrame(values, columns=['Type A', 'Type B'], 
                   index=['Index 1', 'Index 2'])
ax= sns.lineplot(data=df2, markers= True)
ax.set(xlabel='xlabel', ylabel='ylabel', title='Video streaming dropout by category') 

enter image description here

1
  • This specific use case doesn't seem like a reason to use seaborn. As shown in the top-voted answer, you can call set directly on the value returned from DataFrame.plot (which is very similar to the code you've shown here, except without the added dependency). – Bernhard Barker Dec 16 '20 at 9:53
1

In Pandas version 1.10 and above you can use parameters xlabel and ylabel in the method plot:

df.plot(xlabel='X Label', ylabel='Y Label', title='Plot Title')

enter image description here

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