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Pandas groupby two columns and plot

I have a dataframe like this:

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

df = pd.DataFrame({'category': list('XYZXY'), 'B': range(5,10),'sex': list('mfmff')})

I want to plot count of sex male or female based on category from column 'category'.

I tried:
df.groupby(['category','sex'])['category','sex'].count().plot.bar()

But this gives:
enter image description here

How do I get the count of sex per category?

like image 826
BhishanPoudel Avatar asked Jan 01 '19 18:01

BhishanPoudel


3 Answers

Various Methods of Groupby Plots

Data

import numpy as np
import pandas as pd
df = pd.DataFrame({'category': list('XYZXY'),
                   'sex': list('mfmff'),
                   'ThisColumnIsNotUsed': range(5,10)})
df

category sex ThisColumnIsNotUsed
0   X   m   5
1   Y   f   6
2   Z   m   7
3   X   f   8
4   Y   f   9

Using crosstab

pd.crosstab(df['category'],df['sex']).plot.bar()

Using groupby+unstack:

(df.groupby(['sex','category'])
   .count().unstack('sex').plot.bar())

Using pivot_table:

pd.pivot_table(df,index = 'category',
               columns = 'sex',aggfunc ='count').plot.bar()

Using seaborn:

import seaborn as sns
sns.countplot(data=df,x='category',hue='sex')

or,
sns.catplot(data=df,kind='count',x='category',hue='sex')

output

enter image description here

like image 159
BhishanPoudel Avatar answered Oct 19 '22 01:10

BhishanPoudel


IIUC,

df.groupby(['category','sex']).B.count().unstack().reset_index()\
.plot.bar(x = 'category', y = ['f', 'm'])

enter image description here

Edit: If you have multiple columns, you can use groupby, count and droplevel.

new_df = df.groupby(['category','sex']).count().unstack()
new_df.columns = new_df.columns.droplevel()
new_df.reset_index().plot.bar()
like image 31
Vaishali Avatar answered Oct 19 '22 03:10

Vaishali


You can also use this

pd.pivot_table(df, values = 'B', index = 'category', columns = 'sex',
               aggfunc = lambda x: len(x)).plot.bar()

which results in exactly the same plot.

enter image description here

like image 36
plasmon360 Avatar answered Oct 19 '22 03:10

plasmon360