88

After performing a groupby.sum() on a DataFrame I'm having some trouble trying to create my intended plot.

grouped dataframe with multi-index

import pandas as pd
import numpy as np

np.random.seed(365)
rows = 100
data = {'Month': np.random.choice(['2014-01', '2014-02', '2014-03', '2014-04'], size=rows),
        'Code': np.random.choice(['A', 'B', 'C'], size=rows),
        'ColA': np.random.randint(5, 125, size=rows),
        'ColB': np.random.randint(0, 51, size=rows),}
df = pd.DataFrame(data)

     Month Code  ColA  ColB
0  2014-03    C    59    47
1  2014-01    A    24     9
2  2014-02    C    77    50

dfg = df.groupby(['Code', 'Month']).sum()

              ColA  ColB
Code Month              
A    2014-01   124   102
     2014-02   398   282
     2014-03   474   198
     2014-04   830   237
B    2014-01   477   300
     2014-02   591   167
     2014-03   522   192
     2014-04   367   169
C    2014-01   412   180
     2014-02   275   205
     2014-03   795   291
     2014-04   901   309

How can I create a subplot (kind='bar') for each Code, where the x-axis is the Month and the bars are ColA and ColB?

3 Answers 3

134

I found the unstack(level) method to work perfectly, which has the added benefit of not needing a priori knowledge about how many Codes there are.

ax = dfg.unstack(level=0).plot(kind='bar', subplots=True, rot=0, figsize=(9, 7), layout=(2, 3))
plt.tight_layout()

enter image description here

0
26

Using the following DataFrame ...

DataFrame

# using pandas version 0.14.1
from pandas import DataFrame
import pandas as pd
import matplotlib.pyplot as plt

data = {'ColB': {('A', 4): 3.0,
('C', 2): 0.0,
('B', 4): 51.0,
('B', 1): 0.0,
('C', 3): 0.0,
('B', 2): 7.0,
('Code', 'Month'): '',
('A', 3): 5.0,
('C', 1): 0.0,
('C', 4): 0.0,
('B', 3): 12.0},
'ColA': {('A', 4): 66.0,
('C', 2): 5.0,
('B', 4): 125.0,
('B', 1): 5.0,
('C', 3): 41.0,
('B', 2): 52.0,
('Code', 'Month'): '',
('A', 3): 22.0,
('C', 1): 14.0,
('C', 4): 51.0,
('B', 3): 122.0}}

df = DataFrame(data)

... you can plot the following (using cross-section):

f, a = plt.subplots(3,1)
df.xs('A').plot(kind='bar',ax=a[0])
df.xs('B').plot(kind='bar',ax=a[1])
df.xs('C').plot(kind='bar',ax=a[2])

enter image description here

One for A, one for B and one for C, x-axis: 'Month', the bars are ColA and ColB. Maybe this is what you are looking for.

3
  • This gives a "KeyError: 'A'" for me when I try to run this (version 0.13.0).
    – BKay
    Aug 20, 2014 at 12:34
  • I just edited the post, adding the imports. I'm using 0.14.1 and for me the code pasted here works. Maybe somebody with version 0.14.1 can confirm this. Aug 20, 2014 at 12:48
  • I suggest improving this solution by looping over the array of axes a and the codes like this: for ax, code in zip(a.flat, df.index.levels[0]): df.xs(code).plot(kind='bar', ax=ax) Feb 18, 2021 at 11:43
2
  • Creating the desired visualization is all about shaping the dataframe to fit the plotting API.
    • seaborn can easily aggregate long form data from a dataframe without .groupby or .pivot_table.
  • Given the original dataframe df, the easiest option is the convert it to a long form with pandas.DataFrame.melt, and then plot with seaborn.catplot, which is a high-level API for matplotlib.
    • Change the default estimator from mean to sum
  • The 'Month' column in the OP is a string type. In general, it's better to convert the column to datetime dtype with pd._to_datetime
  • Tested in python 3.8.11, pandas 1.3.2, matplotlib 3.4.2, seaborn 0.11.2

seaborn.catplot

import seaborn as sns

dfm = df.melt(id_vars=['Month', 'Code'], var_name='Cols')

     Month Code  Cols  value
0  2014-03    C  ColA     59
1  2014-01    A  ColA     24
2  2014-02    C  ColA     77
3  2014-04    B  ColA    114
4  2014-01    C  ColA     67

# specify row and col to get a plot like that produced by the accepted answer
sns.catplot(kind='bar', data=dfm, col='Code', x='Month', y='value', row='Cols', order=sorted(dfm.Month.unique()),
            col_order=sorted(df.Code.unique()), estimator=sum, ci=None, height=3.5)

enter image description here

sns.catplot(kind='bar', data=dfm, col='Code', x='Month', y='value', hue='Cols', estimator=sum, ci=None,
            order=sorted(dfm.Month.unique()), col_order=sorted(df.Code.unique()))

enter image description here

pandas.DataFrame.plot

  • pandas uses matplotlib and the default plotting backend.
  • To produce the plot like the accepted answer, it's better to use pandas.DataFrame.pivot_table instead of .groupby, because the resulting dataframe is in the correct shape, without the need to unstack.
dfp = df.pivot_table(index='Month', columns='Code', values=['ColA', 'ColB'], aggfunc='sum')

dfp.plot(kind='bar', subplots=True, rot=0, figsize=(9, 7), layout=(2, 3))
plt.tight_layout()

enter image description here

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