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I would like to annotate the data points with their values next to the points on the plot. The examples I found only deal with x and y as vectors. However, I would like to do this for a pandas DataFrame that contains multiple columns.

ax = plt.figure().add_subplot(1, 1, 1)
df.plot(ax = ax)
plt.show()

What is the best way to annotate all the points for a multi-column DataFrame?

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3 Answers 3

up vote 7 down vote accepted

Do you want to use one of the other columns as the text of the annotation? This is something I did recently.

Starting with some example data

In [1]: df
Out[1]: 
           x         y val
 0 -1.015235  0.840049   a
 1 -0.427016  0.880745   b
 2  0.744470 -0.401485   c
 3  1.334952 -0.708141   d
 4  0.127634 -1.335107   e

Plot the points. I plot y against x, in this example.

In [2]: ax = df.set_index('x')['y'].plot(style='o')

Write a function that loops over x, y, and the value to annotate beside the point.

In [3]: def label_point(x, y, val, ax):
    a = pd.concat({'x': x, 'y': y, 'val': val}, axis=1)
    for i, point in a.iterrows():
        ax.text(point['x'], point['y'], str(point['val']))

In [4]: label_point(df.x, df.y, df.val, ax)

In [5]: draw()

Annotated Points

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Here's a (very) slightly slicker version of @DanAllan's answer:

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

df = pd.DataFrame({'x':np.random.rand(10), 'y':np.random.rand(10)}, 
                  index=list(string.ascii_lowercase[:10]))

Which gives:

          x         y
a  0.541974  0.042185
b  0.036188  0.775425
c  0.950099  0.888305
d  0.739367  0.638368
e  0.739910  0.596037
f  0.974529  0.111819
g  0.640637  0.161805
h  0.554600  0.172221
i  0.718941  0.192932
j  0.447242  0.172469

And then:

fig, ax = plt.subplots()
df.plot('x', 'y', kind='scatter', ax=ax)

for k, v in df.iterrows():
    ax.annotate(k, v)

Finally, if you're in interactive mode you might need to refresh the plot:

fig.canvas.draw()

Which produces: Boring scatter plot

Or, since that looks incredibly ugly, you can beautify things a bit pretty easily:

from matplotlib import cm
cmap = cm.get_cmap('Spectral')
df.plot('x', 'y', kind='scatter', ax=ax, s=120, linewidth=0, 
        c=range(len(df)), colormap=cmap)

for k, v in df.iterrows():
    ax.annotate(k, v,
                xytext=(10,-5), textcoords='offset points',
                family='sans-serif', fontsize=18, color='darkslategrey')

Which looks a lot nicer: Nice scatter plot

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I found the previous answers quite helpful, especially @LondonRob's example that improved the layout a bit.

The only thing that bothered me is that I don't like pulling data out of DataFrames to then loop over them. Seems a waste of the DataFrame.

Here was an alternative that avoids the loop using .apply(), and includes the nicer-looking annotations (I thought the color scale was a bit overkill and couldn't get the colorbar to go away):

fig, ax = plt.subplots()
df.plot('x', 'y', 
        kind='scatter', 
        ax=ax, s=50 )

def annotate_df(row):  
    ax.annotate(row.name, row.values,
                xytext=(10,-5), 
                textcoords='offset points',
                size=18, 
                color='darkslategrey')

_ = df.apply(annotate_df, axis=1)

enter image description here

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