I am more familiar with R but I wanted to see if there was a way to do this in pandas. I want to create a count of unique values from one of my dataframe columns and then add a new column with those counts to my original data frame. I've tried a couple different things. I created a pandas series and then calculated counts with the value_counts method. I tried to merge these values back to my original dataframe, but I the keys that I want to merge on are in the Index(ix/loc). Any suggestions or solutions would be appreciated

Color Value
Red   100
Red   150
Blue  50

and I wanted to return something like

Color Value Counts
Red   100   2
Red   150   2 
Blue  50    1
  • 1
    This is popular question lately. See this question here which is almost identical to your situation. – bdiamante Jul 17 '13 at 20:19
df['Counts'] = df.groupby(['Color'])['Value'].transform('count')

For example,

In [102]: df = pd.DataFrame({'Color': 'Red Red Blue'.split(), 'Value': [100, 150, 50]})

In [103]: df
Out[103]: 
  Color  Value
0   Red    100
1   Red    150
2  Blue     50

In [104]: df['Counts'] = df.groupby(['Color'])['Value'].transform('count')

In [105]: df
Out[105]: 
  Color  Value  Counts
0   Red    100       2
1   Red    150       2
2  Blue     50       1

Note that transform('count') ignores NaNs. If you want to count NaNs, use transform(len).


To the anonymous editor: If you are getting an error while using transform('count') it may be due to your version of Pandas being too old. The above works with pandas version 0.15 or newer.

  • Thanks a lot. Very helpful. I've been trying to apply that to a larger DataFrame and keep on getting this error "ValueError: Wrong number of items passed 1, indices imply 4". – user2592989 Jul 17 '13 at 20:47
  • 2
    Try selecting only one column for transform i.e. df.groupby(['Color'])[<colname>].transform('count') – user1827356 Jul 17 '13 at 21:17
  • added to the cookbook : pandas.pydata.org/pandas-docs/dev/cookbook.html#grouping (docs will build tomorrow) – Jeff Jul 17 '13 at 21:47
  • 1
    Not sure this is the best way to do this, but df['new column name'] = df[['col1','col2']].groupby('col1').transform('count') seemed to fix the problem I had with passing the wrong number of items. – user2592989 Jul 18 '13 at 14:01
  • thanks @user2592989, I don't understand why but if you try to do this same thing but count the Value column instead (nvm this being a poor example), I get ValueError: Wrong number of items passed 1, indices imply 2. It is not clear why but this is done using df['Counts'] = df.groupby(['Value', 'Color']).transform('count'). – Steven C. Howell May 15 '15 at 1:16

My initial thought would be to use list comprehension as shown below but, as was pointed out in the comment, this is slower than the groupby and transform method. I will leave this answer to demonstrate WHAT NOT TO DO:

In [94]: df = pd.DataFrame({'Color': 'Red Red Blue'.split(), 'Value': [100, 150, 50]})
In [95]: df['Counts'] = [sum(df['Color'] == df['Color'][i]) for i in xrange(len(df))]
In [96]: df
Out[100]: 
  Color  Value  Counts
0   Red    100       2
1   Red    150       2
2  Blue     50       1

[3 rows x 3 columns]

@unutbu's method gets complicated for DataFrames with several columns which make this simpler to code. If you are working with a small data frame, this is faster (see below), but otherwise, you should use NOT use this.

In [97]: %timeit df = pd.DataFrame({'Color': 'Red Red Blue'.split(), 'Value': [100, 150, 50]}); df['Counts'] = df.groupby(['Color']).transform('count')
100 loops, best of 3: 2.87 ms per loop
In [98]: %timeit df = pd.DataFrame({'Color': 'Red Red Blue'.split(), 'Value': [100, 150, 50]}); df['Counts'] = [sum(df['Color'] == df['Color'][i]) for i in xrange(len(df))]
1000 loops, best of 3: 1.03 ms per loop
  • 3
    The example with 3 rows is very misleading with timing. Try it with a larger dataframe, and you will see that the groupby approach is much faster (I tried it with your df repeated 1000 times (` df = pd.concat([df]*1000, ignore_index=True)`) and get 3.6 ms (gropuby) vs 29 s (list comprehension)). Further, I think the groupby approach is simpler. – joris May 15 '15 at 8:41

One other option:

    z = df['Color'].value_counts 

    z1 = z.to_dict() #converts to dictionary

    df['Count_Column'] = df['Color'].map(z1) 

This option will give you a column with repeated values of the counts, corresponding to the frequency of each value in the 'Color' column.

  • 1
    This can be simplified to: df['Count_Column'] = df['Color'].map(df['Color'].value_counts()). You can use a series to map (doesn't have to be a dict) – sacul Jul 13 at 20:15

df['Counts'] = df.Color.groupby(df.Color).transform('count')

You can do this with any series: group it by itself and call transform('count'):

>>> series = pd.Series(['Red', 'Red', 'Blue'])
>>> series.groupby(series).transform('count')
0    2
1    2
2    1
dtype: int64

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