102

Is there an easy method in pandas to invoke groupby on a range of values increments? For instance given the example below can I bin and group column B with a 0.155 increment so that for example, the first couple of groups in column B are divided into ranges between '0 - 0.155, 0.155 - 0.31 ...`

import numpy as np
import pandas as pd
df=pd.DataFrame({'A':np.random.random(20),'B':np.random.random(20)})

     A         B
0  0.383493  0.250785
1  0.572949  0.139555
2  0.652391  0.401983
3  0.214145  0.696935
4  0.848551  0.516692

Alternatively I could first categorize the data by those increments into a new column and subsequently use groupby to determine any relevant statistics that may be applicable in column A?

151

You might be interested in pd.cut:

>>> df.groupby(pd.cut(df["B"], np.arange(0, 1.0+0.155, 0.155))).sum()
                      A         B
B                                
(0, 0.155]     2.775458  0.246394
(0.155, 0.31]  1.123989  0.471618
(0.31, 0.465]  2.051814  1.882763
(0.465, 0.62]  2.277960  1.528492
(0.62, 0.775]  1.577419  2.810723
(0.775, 0.93]  0.535100  1.694955
(0.93, 1.085]       NaN       NaN

[7 rows x 2 columns]
2
  • 13
    Is it possible for me to do this for multiple dimensions? Essentially grouping by two values simultaneously? – madsthaks Aug 9 '17 at 4:50
  • 3
    I had to group using 2 columns. First column was a string and I had to group rows with same names. Among these group, I had to further group them based on range of values in the second column. I did it as follows: (qa_scores_data.groupby(['Video Name', pandas.cut(qa_scores_data['Frame Name'].astype('float'), [0.5, 12.5, 24.5, 36.5, 48.5])])).mean() – Nagabhushan S N Dec 26 '20 at 12:30
15

Try this:

df = df.sort_values('B')
bins =  np.arange(0, 1.0, 0.155)
ind = np.digitize(df['B'], bins)
    
print df.groupby(ind).head() 

Of course you can use any function on the groups not just head.

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