I want to merge several strings in a dataframe based on a groupedby in Pandas.

This is my code so far:

import pandas as pd
from io import StringIO

data = StringIO("""

# load string as stream into dataframe
df = pd.read_csv(data,header=0, names=["name","text","date"],parse_dates=[2])

# add column with month
df["month"] = df["date"].apply(lambda x: x.month)

I want the end result to look like this:

enter image description here

I don't get how I can use groupby and apply some sort of concatenation of the strings in the column "text". Any help appreciated!


You can groupby the 'name' and 'month' columns, then call transform which will return data aligned to the original df and apply a lambda where we join the text entries:

In [119]:

df['text'] = df[['name','text','month']].groupby(['name','month'])['text'].transform(lambda x: ','.join(x))
    name         text  month
0  name1       hej,du     11
2  name1        aj,oj     12
4  name2     fin,katt     11
6  name2  mycket,lite     12

I sub the original df by passing a list of the columns of interest df[['name','text','month']] here and then call drop_duplicates

EDIT actually I can just call apply and then reset_index:

In [124]:

df.groupby(['name','month'])['text'].apply(lambda x: ','.join(x)).reset_index()

    name  month         text
0  name1     11       hej,du
1  name1     12        aj,oj
2  name2     11     fin,katt
3  name2     12  mycket,lite


the lambda is unnecessary here:


    name  month         text
0  name1     11           du
1  name1     12        aj,oj
2  name2     11     fin,katt
3  name2     12  mycket,lite
  • 1
    In pandas < 1.0, .drop_duplicates() ignores the index, which may give unexpected results. You can avoid this by using .agg(lambda x: ','.join(x)) instead of .transform().drop_duplicates(). – Matthias Fripp May 30 '20 at 2:41
  • Neat and uncomplicated. Eminently fleixible also – Raghavan vmvs Sep 8 '20 at 8:53
  • drop_duplicates() might not work if you do not include parameter drop_duplicates(inplace=True) or just rewrite the line of code as df = df[['name','text','month']].drop_duplicates() – IAmBotmaker Sep 23 '20 at 11:46

we can groupby the 'name' and 'month' columns, then call agg() functions of Panda’s DataFrame objects.

The aggregation functionality provided by the agg() function allows multiple statistics to be calculated per group in one calculation.

df.groupby(['name', 'month'], as_index = False).agg({'text': ' '.join})

enter image description here


The answer by EdChum provides you with a lot of flexibility but if you just want to concateate strings into a column of list objects you can also:

output_series = df.groupby(['name','month'])['text'].apply(list)

  • 2
    Man, you've just saved me a lot of time. Thank you. This is the best way to assemble the chronological lists of registrations/user ids into 'cohorts' that I know of. Thank you once again. – Alex Fedotov Jun 28 '20 at 2:37

For me the above solutions were close but added some unwanted /n's and dtype:object, so here's a modified version:

df.groupby(['name', 'month'])['text'].apply(lambda text: ''.join(text.to_string(index=False))).str.replace('(\\n)', '').reset_index()

If you want to concatenate your "text" in a list:

df.groupby(['name', 'month'], as_index = False).agg({'text': list})

Although, this is an old question. But just in case. I used the below code and it seems to work like a charm.

text = ''.join(df[df['date'].dt.month==8]['text'])

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