Given a data frame that looks like this

  1     5
  2     2
  1     10
  2     20
  1     7

I would like to compute the difference between the largest and smallest value within each group. That is, the result should be

  1      5
  2      18

What is an easy way to do this in Pandas?

What is a fast way to do this in Pandas for a data frame with about 2 million rows and 1 million groups?

3 Answers 3


Using @unutbu 's df

per timing
unutbu's solution is best over large data sets

import pandas as pd
import numpy as np

df = pd.DataFrame({'GROUP': [1, 2, 1, 2, 1], 'VALUE': [5, 2, 10, 20, 7]})


1     5
2    18
Name: VALUE, dtype: int64

np.ptp docs returns the range of an array

small df

enter image description here

large df
df = pd.DataFrame(dict(GROUP=np.arange(1000000) % 100, VALUE=np.random.rand(1000000)))

enter image description here

large df
many groups
df = pd.DataFrame(dict(GROUP=np.arange(1000000) % 10000, VALUE=np.random.rand(1000000)))

enter image description here

  • 2
    For a long time I've been wondering why pandas doesn't have a range method. Good to know numpy has it.
    – ayhan
    Oct 21, 2016 at 19:44
  • 3
    Am I missing something here? It seems like the np.ptp method is only fastest in the "small df" case. In other cases, the .agg([max],[min]).diff(axis=1) method performed significantly better. Jul 26, 2017 at 17:59
  • @HeavyBreathing you didn't miss a thing. I was providing an alternative solution yet validating another poster's solution.
    – piRSquared
    Jul 26, 2017 at 18:09

groupby/agg generally performs best when you take advantage of the built-in aggregators such as 'max' and 'min'. So to obtain the difference, first compute the max and min and then subtract:

import pandas as pd
df = pd.DataFrame({'GROUP': [1, 2, 1, 2, 1], 'VALUE': [5, 2, 10, 20, 7]})
result = df.groupby('GROUP')['VALUE'].agg(['max','min'])
result['diff'] = result['max']-result['min']


1         5
2        18
  • 2
    Honestly, I'm surprised how much better this is than agg(np.ptp) especially over a large number of groups!
    – piRSquared
    Oct 21, 2016 at 19:50
  • What if I want to do this for each of several columns, not just one ('VALUE')?
    – CPBL
    Sep 17, 2017 at 6:26
  • @CPBL: If you want to find the min and max for all the columns of df (per GROUP), then simply remove ['VALUE']. That is, use df.groupby('GROUP').agg(['max', 'min']). If you wish to find the min, max per GROUP for some but not all columns, restrict df first: df[['GROUP','VALUE1','VALUE2']].groupby('GROUP').agg(['max','min']).
    – unutbu
    Sep 17, 2017 at 12:22
  • Thanks. Is there a one-liner for getting the differences? (Not using np.ptp, since I actually want the signed difference from agg(['last','first']))
    – CPBL
    Sep 17, 2017 at 16:05
  • 1
    @CPBL: You could use df.groupby('GROUP').agg(['last','first']).stack(level=0).diff(axis=1).unstack(-1)['last']. But I don't find that particularly readable. Perhaps using 3 lines result = df.groupby('GROUP').agg(['last','first']), result = result.reorder_levels([1,0], axis=1), result['last'] - result['first'] is better.
    – unutbu
    Sep 17, 2017 at 18:47

Note: this will get the job done, but @piRSquared's answer has faster methods.

You can use groupby(), min(), and max():

df.groupby('GROUP')['VALUE'].apply(lambda g: g.max() - g.min())

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