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I have a pandas.DataFrame with a column called name containing strings. I would like to get a list of the names which occur more than once in the column. How do I do that?

I tried:

funcs_groups = funcs.groupby(funcs.name)
funcs_groups[(funcs_groups.count().name>1)]

But it doesn't filter out the singleton names.

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up vote 24 down vote accepted

If you want to find the rows with duplicated name (except the first time we see that), you can try this

In [16]: import pandas as pd
In [17]: p1 = {'name': 'willy', 'age': 10}
In [18]: p2 = {'name': 'willy', 'age': 11}
In [19]: p3 = {'name': 'zoe', 'age': 10}
In [20]: df = pd.DataFrame([p1, p2, p3])

In [21]: df
Out[21]: 
   age   name
0   10  willy
1   11  willy
2   10    zoe

In [22]: df.duplicated('name')
Out[22]: 
0    False
1     True
2    False
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2  
I like this better than mine. – DSM Mar 6 '13 at 14:55
    
Thanks, I also learned something from yours. – waitingkuo Mar 6 '13 at 16:16

A one liner can be:

x.set_index('name').index.get_duplicates()

the index contains a method for finding duplicates, columns does not seem to have a similar method..

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This is exactly what I needed. Thanks @idoda! – propjk007 Dec 14 '15 at 22:33

I had a similar problem and came across this answer.

I guess this also works:

counts = df.groupby('name').size()
df2 = pd.DataFrame(counts, columns = ['size'])
df2 = df2[df2.size>1]

and df2.index will give you a list of names with duplicates

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1  
Better to use df2['size'] instead of df2.size as df2.size is a built-in function. – Lydia Jul 31 '15 at 18:36

Another one liner can be:

(df.name).drop_duplicates()
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