683

I have a dataframe:

   City     Name
0   Seattle    Alice
1   Seattle      Bob
2  Portland  Mallory
3   Seattle  Mallory
4   Seattle      Bob
5  Portland  Mallory

I perform the following grouping:

g1 = df1.groupby(["Name", "City"]).count()

which when printed looks like:

                  City  Name
Name    City
Alice   Seattle      1     1
Bob     Seattle      2     2
Mallory Portland     2     2
        Seattle      1     1

But what I want eventually is another DataFrame object that contains all the rows in the GroupBy object. In other words I want to get the following result:

                  City  Name
Name    City
Alice   Seattle      1     1
Bob     Seattle      2     2
Mallory Portland     2     2
Mallory Seattle      1     1

How do I do it?

6
  • 1
    Aside question: which pandas version do you use? If execute first 2 commands I get g1 as Empty DataFrame Columns: [] Index: [(Alice, Seattle), (Bob, Seattle), (Mallory, Portland), (Mallory, Seattle)]
    – Timofey
    Mar 30, 2018 at 19:01
  • 2
    The question's title is misleading with regard to the accepted answer
    – matanox
    Dec 25, 2018 at 20:00
  • 1
    @matanster may I ask what you came here looking to know the answer to? We can think about writing a more accurate answer and directing users' attention with a comment under the question. Jan 21, 2019 at 20:20
  • @coldspeed This is just a typical issue with SO, question titles are let to diverge significantly from the content of the question and answers. If meta wasn't as hostile that would probably be a useful aspect to raise there.
    – matanox
    Jan 22, 2019 at 6:40
  • 2
    @matanster I agree, however I was only curious to know what it is you were actually searching the answer for, such that it led you to here. Jan 22, 2019 at 6:41

13 Answers 13

699

g1 here is a DataFrame. It has a hierarchical index, though:

In [19]: type(g1)
Out[19]: pandas.core.frame.DataFrame

In [20]: g1.index
Out[20]: 
MultiIndex([('Alice', 'Seattle'), ('Bob', 'Seattle'), ('Mallory', 'Portland'),
       ('Mallory', 'Seattle')], dtype=object)

Perhaps you want something like this?

In [21]: g1.add_suffix('_Count').reset_index()
Out[21]: 
      Name      City  City_Count  Name_Count
0    Alice   Seattle           1           1
1      Bob   Seattle           2           2
2  Mallory  Portland           2           2
3  Mallory   Seattle           1           1

Or something like:

In [36]: DataFrame({'count' : df1.groupby( [ "Name", "City"] ).size()}).reset_index()
Out[36]: 
      Name      City  count
0    Alice   Seattle      1
1      Bob   Seattle      2
2  Mallory  Portland      2
3  Mallory   Seattle      1
11
  • 96
    You could have used: df1.groupby( [ "Name", "City"] ).size().to_frame(name = 'count').reset_index() Aug 13, 2016 at 13:35
  • 5
    The second example using .reset_index() seems to me to be the best way of joining the output you will get from df.groupby('some_column').apply(your_custom_func). This was not intuitive for me.
    – Alexander
    Jan 16, 2017 at 16:57
  • 13
    Is this also true in Python 3? I'm finding a groupby function returning the pandas.core.groupby.DataFrameGroupBy object, not pandas.core.frame.DataFrame. Sep 10, 2018 at 17:31
  • 10
    This answer seems irrelevant for latest python and pandas
    – matanox
    Oct 8, 2018 at 17:07
  • 2
    .to_frame() is what I came here for and was the method I wasn't aware of, and it perfectly answers the question as it is currently worded. In my case, I wanted to keep my MultiIndex but just turn my resulting GroupBy Series into a DataFrame so Jupyter would display it nicely.
    – Excel Help
    Nov 8, 2019 at 13:41
191

I want to slightly change the answer given by Wes, because version 0.16.2 requires as_index=False. If you don't set it, you get an empty dataframe.

Source:

Aggregation functions will not return the groups that you are aggregating over if they are named columns, when as_index=True, the default. The grouped columns will be the indices of the returned object.

Passing as_index=False will return the groups that you are aggregating over, if they are named columns.

Aggregating functions are ones that reduce the dimension of the returned objects, for example: mean, sum, size, count, std, var, sem, describe, first, last, nth, min, max. This is what happens when you do for example DataFrame.sum() and get back a Series.

nth can act as a reducer or a filter, see here.

import pandas as pd

df1 = pd.DataFrame({"Name":["Alice", "Bob", "Mallory", "Mallory", "Bob" , "Mallory"],
                    "City":["Seattle","Seattle","Portland","Seattle","Seattle","Portland"]})
print df1
#
#       City     Name
#0   Seattle    Alice
#1   Seattle      Bob
#2  Portland  Mallory
#3   Seattle  Mallory
#4   Seattle      Bob
#5  Portland  Mallory
#
g1 = df1.groupby(["Name", "City"], as_index=False).count()
print g1
#
#                  City  Name
#Name    City
#Alice   Seattle      1     1
#Bob     Seattle      2     2
#Mallory Portland     2     2
#        Seattle      1     1
#

EDIT:

In version 0.17.1 and later you can use subset in count and reset_index with parameter name in size:

print df1.groupby(["Name", "City"], as_index=False ).count()
#IndexError: list index out of range

print df1.groupby(["Name", "City"]).count()
#Empty DataFrame
#Columns: []
#Index: [(Alice, Seattle), (Bob, Seattle), (Mallory, Portland), (Mallory, Seattle)]

print df1.groupby(["Name", "City"])[['Name','City']].count()
#                  Name  City
#Name    City                
#Alice   Seattle      1     1
#Bob     Seattle      2     2
#Mallory Portland     2     2
#        Seattle      1     1

print df1.groupby(["Name", "City"]).size().reset_index(name='count')
#      Name      City  count
#0    Alice   Seattle      1
#1      Bob   Seattle      2
#2  Mallory  Portland      2
#3  Mallory   Seattle      1

The difference between count and size is that size counts NaN values while count does not.

3
  • 12
    I think this is the easiest way - a one liner which uses the nice fact that you can name the series column with reset_index: df1.groupby( [ "Name", "City"]).size().reset_index(name="count")
    – Ben
    Mar 17, 2016 at 18:41
  • 1
    Is there a reason why as_index=False' stopped working in latest versions? I also tried to run df1.groupby(["Name", "City"], as_index=False ).size()` but it doesn't affect result (probably because result of the grouping is Series not DataFrame Dec 16, 2016 at 14:18
  • 1
    I am not sure, but it seems there are only 2 columns and groupby by these columns. But I am not sure, because I am not pandas developer.
    – jezrael
    Dec 16, 2016 at 14:23
73

The key is to use the reset_index() method.

Use:

import pandas

df1 = pandas.DataFrame( { 
    "Name" : ["Alice", "Bob", "Mallory", "Mallory", "Bob" , "Mallory"] , 
    "City" : ["Seattle", "Seattle", "Portland", "Seattle", "Seattle", "Portland"] } )

g1 = df1.groupby( [ "Name", "City"] ).count().reset_index()

Now you have your new dataframe in g1:

result dataframe

2
  • 3
    This works, thanks! Just a clarification, count() function counts all distinct values, thus skips duplicates automatically. After that, reset_index() does the trick of creating a new dataframe free from duplicates.
    – Ph03nIX
    Aug 6, 2020 at 21:33
  • @saveener You are almost there. You've got a multi-index dataframe coming from "g1 = df1.groupby( [ "Name", "City"] ).count()". All you need to do next is reset_index to convert it back to a regular dataframe with redundant Name index values for Mallory: Portland and Mallory: Seattle. This answer by Ferd should be the accepted answer. Nov 28, 2022 at 4:48
37

Simply, this should do the task:

import pandas as pd

grouped_df = df1.groupby( [ "Name", "City"] )

pd.DataFrame(grouped_df.size().reset_index(name = "Group_Count"))

Here, grouped_df.size() pulls up the unique groupby count, and reset_index() method resets the name of the column you want it to be. Finally, the pandas Dataframe() function is called upon to create a DataFrame object.

3
  • 2
    Check out the .to_frame() method: grouped_df.size().to_frame('Group_Count')
    – Sealander
    Aug 7, 2017 at 3:03
  • reset_index doesn't have a name argument. Jan 12, 2021 at 16:07
  • 1
    I was struck by the name argument too. Turns out the key is that DataFrameGroupBy.size() and friends return a Series by default, not a DataFrame. The reset_index() method on a Series does have name. The default return type can be changed by the as_index argument to groupby(). This loose typing and indirect method calling makes the document very hard to browse! Oct 9, 2021 at 22:08
15

Maybe I misunderstand the question but if you want to convert the groupby back to a dataframe you can use .to_frame(). I wanted to reset the index when I did this so I included that part as well.

example code unrelated to question

df = df['TIME'].groupby(df['Name']).min()
df = df.to_frame()
df = df.reset_index(level=['Name',"TIME"])
8

I found this worked for me.

import numpy as np
import pandas as pd

df1 = pd.DataFrame({ 
    "Name" : ["Alice", "Bob", "Mallory", "Mallory", "Bob" , "Mallory"] , 
    "City" : ["Seattle", "Seattle", "Portland", "Seattle", "Seattle", "Portland"]})

df1['City_count'] = 1
df1['Name_count'] = 1

df1.groupby(['Name', 'City'], as_index=False).count()
7

Below solution may be simpler:

df1.reset_index().groupby( [ "Name", "City"],as_index=False ).count()
0
7

This returns the ordinal levels/indices in the same order as a vanilla groupby() method. It's basically the same as the answer @NehalJWani posted in his comment, but stored in a variable with the reset_index() method called on it.

fare_class = df.groupby(['Satisfaction Rating','Fare Class']).size().to_frame(name = 'Count')
fare_class.reset_index()

This version not only returns the same data with percentages which is useful for stats, but also includes a lambda function.

fare_class_percent = df.groupby(['Satisfaction Rating', 'Fare Class']).size().to_frame(name = 'Percentage')
fare_class_percent.transform(lambda x: 100 * x/x.sum()).reset_index()

      Satisfaction Rating      Fare Class  Percentage
0            Dissatisfied        Business   14.624269
1            Dissatisfied         Economy   36.469048
2               Satisfied        Business    5.460425
3               Satisfied         Economy   33.235294

Example: enter image description here

5

I have aggregated with Qty wise data and store to dataframe

almo_grp_data = pd.DataFrame({'Qty_cnt' :
almo_slt_models_data.groupby( ['orderDate','Item','State Abv']
          )['Qty'].sum()}).reset_index()
4

These solutions only partially worked for me because I was doing multiple aggregations. Here is a sample output of my grouped by that I wanted to convert to a dataframe:

Groupby Output

Because I wanted more than the count provided by reset_index(), I wrote a manual method for converting the image above into a dataframe. I understand this is not the most pythonic/pandas way of doing this as it is quite verbose and explicit, but it was all I needed. Basically, use the reset_index() method explained above to start a "scaffolding" dataframe, then loop through the group pairings in the grouped dataframe, retrieve the indices, perform your calculations against the ungrouped dataframe, and set the value in your new aggregated dataframe.

df_grouped = df[['Salary Basis', 'Job Title', 'Hourly Rate', 'Male Count', 'Female Count']]
df_grouped = df_grouped.groupby(['Salary Basis', 'Job Title'], as_index=False)

# Grouped gives us the indices we want for each grouping
# We cannot convert a groupedby object back to a dataframe, so we need to do it manually
# Create a new dataframe to work against
df_aggregated = df_grouped.size().to_frame('Total Count').reset_index()
df_aggregated['Male Count'] = 0
df_aggregated['Female Count'] = 0
df_aggregated['Job Rate'] = 0

def manualAggregations(indices_array):
    temp_df = df.iloc[indices_array]
    return {
        'Male Count': temp_df['Male Count'].sum(),
        'Female Count': temp_df['Female Count'].sum(),
        'Job Rate': temp_df['Hourly Rate'].max()
    }

for name, group in df_grouped:
    ix = df_grouped.indices[name]
    calcDict = manualAggregations(ix)

    for key in calcDict:
        #Salary Basis, Job Title
        columns = list(name)
        df_aggregated.loc[(df_aggregated['Salary Basis'] == columns[0]) & 
                          (df_aggregated['Job Title'] == columns[1]), key] = calcDict[key]

If a dictionary isn't your thing, the calculations could be applied inline in the for loop:

    df_aggregated['Male Count'].loc[(df_aggregated['Salary Basis'] == columns[0]) & 
                                (df_aggregated['Job Title'] == columns[1])] = df['Male Count'].iloc[ix].sum()
1
  • Could you please share the dataset you used for your solution? Thanks a lot!
    – JeffZheng
    Feb 7, 2019 at 19:39
1
 grouped=df.groupby(['Team','Year'])['W'].count().reset_index()

 team_wins_df=pd.DataFrame(grouped)
 team_wins_df=team_wins_df.rename({'W':'Wins'},axis=1)
 team_wins_df['Wins']=team_wins_df['Wins'].astype(np.int32)
 team_wins_df.reset_index()
 print(team_wins_df)
0

Try to set group_keys=False in the group_by method to prevent adding the group key to the index.

Example:

import numpy as np
import pandas as pd

df1 = pd.DataFrame({ 
    "Name" : ["Alice", "Bob", "Mallory", "Mallory", "Bob" , "Mallory"] , 
    "City" : ["Seattle", "Seattle", "Portland", "Seattle", "Seattle", "Portland"]})
df1.groupby(["Name"], group_keys=False)
0

.reset_index() method / as_index=False parameter

In most practical cases, these two variations behave the same. In fact if we look at the source code of groupby, for some methods, as_index=False is literally equivalent to reset_index().

# sample data
df = pd.DataFrame({
    'A': ['g1', 'g1', 'g2', 'g2'], 
    'B': [1, 1, 2, 2],
    'C': [1, 2, 3, 4]
})

y1 = df.groupby(['A', 'B'], as_index=False)['C'].sum()
y2 = df.groupby(['A', 'B'])['C'].sum().reset_index()
y1.equals(y2)   # True

Ultimately, reset_index() makes the following transformation (and passing as_index=False avoids the Series on the left altogether). Note that it creates a 3-column (number of grouper columns + column being aggregated) dataframe.

result1

reset_index and as_index=False behave differently, if a column used in the grouper is also in the output (as in the OP). In that case, as_index=False drops all overlapping columns from the grouper (via the _insert_inaxis_grouper method). The following example illustrates this point.

df = pd.DataFrame({'A': ['g1', 'g1', 'g2', 'g2'], 'B': [1, 1, 2, 2]})

df.groupby(['A', 'B'])['B'].sum()                           # <--- includes B as a grouper
df.groupby(['A', 'B'])['B'].sum().reset_index(name='Total') # <--- includes B as a grouper
df.groupby(['A', 'B'], as_index=False)['B'].sum()           # <--- drops B from the grouper

differing case

.to_frame() method / groupby.method on a list of columns

to_frame() method converts a Series into a DataFrame where the grouper is retained as the index and the values in the Series are converted into a DataFrame column. You can optionally pass a name for the aggregated column. However, if name is not passed, it's exactly the same as simply calling an aggregator function on a list of columns of groupby.

x1 = df.groupby(['A', 'B'])['C'].sum().to_frame()
x2 = df.groupby(['A', 'B'])[['C']].sum()
#                          ^^   ^^  <--- list of columns
x1.equals(x2)   # True


# if `name=` is passed, it can rename the aggregated column in one go
x3 = df.groupby(['A', 'B'])['C'].sum().to_frame('Total')
x4 = df.groupby(['A', 'B'])[['C']].sum().rename(columns={'C': 'Total'})
x3.equals(x4)   # True

Ultimately, to_frame(name) makes the following transformation (and passing a list of columns to aggregate avoids the Series on the left altogether). Notice that unlike reset_index(), it creates a single column dataframe.

result2


Lastly, at least as of pandas 0.16.2, groupby.count method (the specific groupby method in the OP) returns an empty dataframe. However, calling count on each split via groupby.agg recovers the aggregated counts. As mentioned in jezrael's answer, listing all aggregated columns also works but if there are many columns, this case may be more readable.

df1 = pd.DataFrame({ 
    "Name": ["Alice", "Bob", "Mallory", "Mallory", "Bob" , "Mallory"], 
    "City": ["Seattle", "Seattle", "Portland", "Seattle", "Seattle", "Portland"]
})

df1.groupby(['Name', 'City']).count()                   # empty dataframe
df1.groupby(['Name', 'City']).agg(lambda x: x.count())  # OK

result3

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