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Suppose we start from this simple table, stored in a pandas dataframe:

    name  age  family
0   john    1       1
1  jason   36       1
2   jane   32       1
3   jack   26       2
4  james   30       2

Then I do

group_df = df.groupby('family')
group_df = group_df.aggregate({'name': name_join, 'age': pd.np.mean})

where name_join is a simple aggregating function for the names:

def name_join(list_names, concat='-'):
    return concat.join(list_names)

the output is:

        age             name
1        23  john-jason-jane
2        28       jack-james

Now the question.

Is there a quick, efficient way to get to the following from the aggregated table?

    name  age  family
0   john   23       1
1  jason   23       1
2   jane   23       1
3   jack   28       2
4  james   28       2

(Note: numbers are just examples, I don't care for the information I am losing after averaging in this specific example)

The way I thought I could do it does not look too efficient:

  1. create empty dataframe
  2. from every line in group_df, separate the names
  3. return a dataframe with as many rows as there are names in the starting row
  4. append the output to the empty dataframe
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possible duplicate of pandas: How do I split text in a column into multiple columns? –  Andy Hayden Nov 21 '13 at 18:20

1 Answer 1

up vote 3 down vote accepted

It may not be helpful to think of the operation as the "opposite" of groupby.

You are splitting a string in to pieces, and maintaining each piece's association with 'family'. This old answer of mine does the job.

Just set 'family' as the index column first, refer to the link above, and then reset_index() at the end to get your desired result.

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brilliant! I'm still looking at what the combination of apply, lambda, pd.Series and stack does, but it works exactly as intended. thanks! –  mkln Nov 21 '13 at 14:08

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