324

I need to count unique ID values in every domain.

I have data:

ID, domain
123, 'vk.com'
123, 'vk.com'
123, 'twitter.com'
456, 'vk.com'
456, 'facebook.com'
456, 'vk.com'
456, 'google.com'
789, 'twitter.com'
789, 'vk.com'

I try df.groupby(['domain', 'ID']).count()

But I want to get

domain, count
vk.com   3
twitter.com   2
facebook.com   1
google.com   1
0

4 Answers 4

406

You need nunique:

df = df.groupby('domain')['ID'].nunique()

print (df)
domain
'facebook.com'    1
'google.com'      1
'twitter.com'     2
'vk.com'          3
Name: ID, dtype: int64

If you need to strip ' characters:

df = df.ID.groupby([df.domain.str.strip("'")]).nunique()
print (df)
domain
facebook.com    1
google.com      1
twitter.com     2
vk.com          3
Name: ID, dtype: int64

Or as Jon Clements commented:

df.groupby(df.domain.str.strip("'"))['ID'].nunique()

You can retain the column name like this:

df = df.groupby(by='domain', as_index=False).agg({'ID': pd.Series.nunique})
print(df)
    domain  ID
0       fb   1
1      ggl   1
2  twitter   2
3       vk   3

The difference is that nunique() returns a Series and agg() returns a DataFrame.

8
  • strange, but to my data it return quantity all domain, not unique users Jul 11, 2016 at 15:25
  • Interesting, it works nice with sample and not with real data?
    – jezrael
    Jul 11, 2016 at 15:33
  • df.groupby(df.domain.str.strip("'"))['ID'].nunique() it returns correct, but it df = df.groupby('domain')['ID'].nunique() not Jul 11, 2016 at 15:47
  • 2
    For this block of code: df = df.groupby('domain')['ID'].nunique() ; does anyone know how to make the output a column in the dataframe?
    – Hana
    Jan 26, 2018 at 16:56
  • 1
    @00schneider - You are right, my first solution in answer.
    – jezrael
    Mar 30, 2020 at 10:04
341

Generally to count distinct values in single column, you can use Series.value_counts:

df.domain.value_counts()

#'vk.com'          5
#'twitter.com'     2
#'facebook.com'    1
#'google.com'      1
#Name: domain, dtype: int64

To see how many unique values in a column, use Series.nunique:

df.domain.nunique()
# 4

To get all these distinct values, you can use unique or drop_duplicates, the slight difference between the two functions is that unique return a numpy.array while drop_duplicates returns a pandas.Series:

df.domain.unique()
# array(["'vk.com'", "'twitter.com'", "'facebook.com'", "'google.com'"], dtype=object)

df.domain.drop_duplicates()
#0          'vk.com'
#2     'twitter.com'
#4    'facebook.com'
#6      'google.com'
#Name: domain, dtype: object

As for this specific problem, since you'd like to count distinct value with respect to another variable, besides groupby method provided by other answers here, you can also simply drop duplicates firstly and then do value_counts():

import pandas as pd
df.drop_duplicates().domain.value_counts()

# 'vk.com'          3
# 'twitter.com'     2
# 'facebook.com'    1
# 'google.com'      1
# Name: domain, dtype: int64
1
  • in case anyone is wondering, I believe df.groupby('foo')['foo'].count() == df['foo'].value_counts()
    – d8aninja
    Jul 27, 2021 at 2:44
67

df.domain.value_counts()

>>> df.domain.value_counts()

vk.com          5

twitter.com     2

google.com      1

facebook.com    1

Name: domain, dtype: int64
1
  • df.isnull().any(axis=1).value_counts()
    – Manjul
    Sep 1, 2018 at 8:46
15

If I understand correctly, you want the number of different IDs for every domain. Then you can try this:

output = df.drop_duplicates()
output.groupby('domain').size()

Output:

    domain
facebook.com    1
google.com      1
twitter.com     2
vk.com          3
dtype: int64

You could also use value_counts, which is slightly less efficient. But the best is Jezrael's answer using nunique:

%timeit df.drop_duplicates().groupby('domain').size()
1000 loops, best of 3: 939 µs per loop
%timeit df.drop_duplicates().domain.value_counts()
1000 loops, best of 3: 1.1 ms per loop
%timeit df.groupby('domain')['ID'].nunique()
1000 loops, best of 3: 440 µs per loop
2
  • 2
    value_counts is slightly faster on a larger dataframe: i.imgur.com/V8kcVb8.png
    – ayhan
    Jul 11, 2016 at 15:19
  • @ayhan I should have tried on larger dataframes, my bad. Thank you for pointing that!
    – ysearka
    Jul 12, 2016 at 8:07

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