1

I have a pandas dataframe

df = pd.DataFrame([{'a':'Male','c1':3,'c2':10},{'a':'Male','c1':3, 'c2':30},{'a':'Male','c1':1,'c2':20},{'a':'Female','c1':2,'c2':15},{'a':'Female','c1':2,'c2':100}])

I want to print the bellow:

   a      c1   c2
0  Male   3    10
1              30
2  Male   1    20
3  Female 2    15
4             100

Would you please help me?

3
  • 2
    Please add a description of your desired result, I'm guess you want to null the duplicated values
    – EdChum
    Sep 29, 2015 at 9:21
  • 1
    Please provide code snippet of your current progress as a place to start.
    – konqi
    Sep 29, 2015 at 9:22
  • 1
    Please don't update your question with changing requirements, you should state upfront either your real data or representative data relevant to your question, it's very poor form on SO
    – EdChum
    Sep 29, 2015 at 9:44

1 Answer 1

5

I don't know if you literally want a blank string or NaN but I'm using NaN here, you can test if a column has duplicated values using duplicated and set these to your desired result, by the way you need to add an explanation of what your desired result means rather us guess:

In [128]:
df.loc[df['c1'].duplicated(), 'c1'] = np.NaN
df

Out[128]:
   c1   c2
0   3   10
1 NaN   30
2   1   20
3   2   15
4 NaN  100

The blank string version:

In [131]:
df.loc[df['c1'].duplicated(), 'c1'] = ''
df

Out[131]:
  c1   c2
0  3   10
1      30
2  1   20
3  2   15
4     100

EDIT

You updated your question so I've updated my answer:

In [143]:
df.loc[(df['a'].duplicated() & df['c1'].duplicated()), ['a','c1']] = ''
df

Out[143]:
        a c1   c2
0    Male  3   10
1              30
2    Male  1   20
3  Female  2   15
4             100
2
  • Hi, thanks a lots but but would you please see my question again?
    – Ranajit
    Sep 29, 2015 at 9:38
  • Sorry, If 'a' and 'c1' both are duplicated than it will be ' ' ,Otherwise not , please see you again my output template ...
    – Ranajit
    Sep 29, 2015 at 9:56

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