1

My pandas DataFrame data:

     dat1 dat2 dat3
0    1    1    [{"gid": 1, "bs": "2", "_cc": "1"}]
1    1    1    [{"gid": 1, "bs": "2", "_cc": "1"}]
2    2    3    [{"gid": 3, "bs": "5", "_cc": "1"}]

I need to groupby the column dat1, my expected output should be:

     dat1 dat2 dat3
0    1    1    [{"gid": 1, "bs": "2", "_cc": "1"}]
1    2    3    [{"gid": 3, "bs": "5", "_cc": "1"}]

I used pandas dataframe as follow:

data = dataframedata   #dataframe data 
(out['dat1','dat2','dat3']).groupby([ 'dat1','dat2','dat3']).size().reset_index()

I get keyerror at dat3, please guide me to find the solution thanks in advance.

  • 2
    df.drop_duplicates() not working? – anky_91 Feb 12 at 6:38
1

Problem is lists are not hashable, so need convert them to strings:

data = df[~df['dat3'].astype(str).duplicated()] 
print (data)
   dat1  dat2                                 dat3
0     1     1  [{'gid': 1, 'bs': '2', '_cc': '1'}]
2     2     3  [{'gid': 3, 'bs': '5', '_cc': '1'}]

If want remove duplicates by multiple columns:

data = df[~df.assign(dat3= df['dat3'].astype(str)).duplicated(['dat1','dat2','dat3'])] 
print (data)
   dat1  dat2                                 dat3
0     1     1  [{'gid': 1, 'bs': '2', '_cc': '1'}]
2     2     3  [{'gid': 3, 'bs': '5', '_cc': '1'}]
  • 1
    df[~df['dat3'].astype(str).duplicated()] ... This works for me @jezrael ... Thank you – selvakumar Feb 12 at 6:51
  • 1
    @selvakumar - Supper, it is better solution. – jezrael Feb 12 at 6:51

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