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I am trying to transform DataFrame, such that some of the rows will be replicated a given number of times. For example:

df = pd.DataFrame({'class': ['A', 'B', 'C'], 'count':[1,0,2]})

  class  count
0     A      1
1     B      0
2     C      2

should be transformed to:

0     A   
1     C   
2     C 

This is the reverse of aggregation with count function. Is there an easy way to achieve it in pandas (without using for loops or list comprehensions)?

One possibility might be to allow DataFrame.applymap function return multiple rows (akin apply method of GroupBy). However, I do not think it is possible in pandas now.

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I have also in mind a general function that will allow to return multiple, one or zero rows depending on values in count column. – btel Oct 24 '12 at 13:29
up vote 7 down vote accepted

You could use groupby:

def f(group):
    row = group.irow(0)
    return DataFrame({'class': [row['class']] * row['count']})
df.groupby('class', group_keys=False).apply(f)

so you get

In [25]: df.groupby('class', group_keys=False).apply(f)
0     A
0     C
1     C

You can fix the index of the result however you like

share|improve this answer
That solves my problem! Thanks Wes. – btel Oct 24 '12 at 17:50
Good answer! If I have dozens of other columns, is there an easy way to preserve those columns in the result of f other than typing them all out explicitly? – Snoozer Mar 14 '13 at 7:25

I know this is an old question, but I was having trouble getting Wes' answer to work for multiple columns in the dataframe so I made his code a bit more generic. Thought I'd share in case anyone else stumbles on this question with the same problem.

You just basically specify what column has the counts in it in and you get an expanded dataframe in return.

import pandas as pd
df = pd.DataFrame({'class 1': ['A','B','C','A'],
                   'class 2': [ 1,  2,  3,  1], 
                   'count':   [ 3,  3,  3,  1]})
print df,"\n"

def f(group, *args):
    row = group.irow(0)
    Dict = {}
    row_dict = row.to_dict()
    for item in row_dict: Dict[item] = [row[item]] * row[args[0]]
    return pd.DataFrame(Dict)

def ExpandRows(df,WeightsColumnName):
    df_expand = df.groupby(df.columns.tolist(), group_keys=False).apply(f,WeightsColumnName).reset_index(drop=True)
    return df_expand

df_expanded = ExpandRows(df,'count')
print df_expanded


  class 1  class 2  count
0       A        1      3
1       B        2      3
2       C        3      3
3       A        1      1 

  class 1  class 2  count
0       A        1      1
1       A        1      3
2       A        1      3
3       A        1      3
4       B        2      3
5       B        2      3
6       B        2      3
7       C        3      3
8       C        3      3
9       C        3      3

With regards to speed, my base df is 10 columns by ~6k rows and when expanded is ~100,000 rows takes ~7 seconds. I'm not sure in this case if grouping is necessary or wise since it's taking all the columns to group form, but hey whatever only 7 seconds.

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repeated_items = [list(row[1]*row[2]) for row in df.itertuples()]

will create a nested list:

[['A'], [], ['C', 'C']]

which you can then iterate over with list comprehensions to create a new data frame:

new_df = pd.DataFrame({"class":[j for i in repeated_items for j in i]})

Of course, you can do it in a single line as well if you want:

new_df = pd.DataFrame({"class":[j for i in [list(row[1]*row[2]) for row in df.itertuples()] for j in i]})
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