Given the following (totally overkill) data frame example

import pandas as pd
import datetime as dt
df = pd.DataFrame({
         "date"    :  [dt.date(2012, x, 1) for x in range(1, 11)], 
         "returns" :  0.05 * np.random.randn(10), 
         "dummy"   :  np.repeat(1, 10)

is there an existing built-in way to apply two different aggregating functions to the same column, without having to call agg multiple times?

The syntactically wrong, but intuitively right, way to do it would be:

# Assume `function1` and `function2` are defined for aggregating.
df.groupby("dummy").agg({"returns":function1, "returns":function2})

Obviously, Python doesn't allow duplicate keys. Is there any other manner for expressing the input to agg? Perhaps a list of tuples [(column, function)] would work better, to allow multiple functions applied to the same column? But it seems like it only accepts a dictionary.

Is there a workaround for this besides defining an auxiliary function that just applies both of the functions inside of it? (How would this work with aggregation anyway?)

  • Related -Aggregation in pandas – jezrael Jan 26 at 6:00
  • The accepted answer uses dictionaries to set names in the output column which is deprecated. For a more up-to-date answer, see here. – cs95 Apr 1 at 4:49

You can simply pass the functions as a list:

In [20]: df.groupby("dummy").agg({"returns": [np.mean, np.sum]})
            sum      mean

1      0.285833  0.028583

or as a dictionary:

In [21]: df.groupby('dummy').agg({'returns':
                                  {'Mean': np.mean, 'Sum': np.sum}})
            Sum      Mean
1      0.285833  0.028583

Would something like this work:

In [7]: df.groupby('dummy').returns.agg({'func1' : lambda x: x.sum(), 'func2' : lambda x: x.prod()})
              func2     func1
1     -4.263768e-16 -0.188565
  • 1
    No, this does not work. If you look at the doc string for aggregate it explicitly says that when a dict is passed, the keys must be column names. So either your example is something you typed in without checking for this error, or else Pandas breaks its own docs here. – ely Sep 26 '12 at 17:31
  • N/M I didn't see the extra call to returns in there. So this is the Series version of aggregate? I'm looking to do the DataFrame version of aggregate, and I want to apply several different aggregations to each column all at once. – ely Sep 26 '12 at 17:52
  • Try this: df.groupby('dummy').agg({'returns': {'func1' : lambda x: x.sum(), 'func2' : lambda x: x.mean()}}) – Chang She Sep 26 '12 at 19:35
  • It gives an assertion error with no message. From the looks of the code (pandas.core.internals.py, lines 406-408, version 0.7.3) it looks like it does a check at the end to make sure it's not returning more columns than there are keys within the first layer of the aggregation dictionary. – ely Sep 26 '12 at 19:39
  • Works fine on master. You want to try updating? – Chang She Sep 26 '12 at 21:11

One obvious way of doing this is by specifying a dictionary mapping column names to a list of functions to aggregate with:

df.groupby("dummy").agg({'returns': [function1, function2]})

df.groupby("dummy").agg({'returns': ['sum', 'mean']})

            sum      mean
1      0.328953  0.032895

However, if your functions only operate on the column, the syntax is a little more simple—a dictionary is not needed if aggregating on a Series:

df.groupby("dummy")['returns'].agg([function1, function2])

df.groupby('dummy')['returns'].agg(['sum', 'mean'])

            sum      mean
1      0.328953  0.032895

This also eliminates the MultiIndex in the output.

In more recent versions of pandas, if using a dictionary for specifying column names for the aggregation output, you will get a FutureWarning:

df.groupby('dummy').agg({'returns': {'Mean': 'mean', 'Sum': 'sum'}})
# FutureWarning: using a dict with renaming is deprecated and will be removed 
# in a future version

Using a dictionary for renaming columns is deprecated in v0.20. On more recent versions of pandas, this can be specified more simply by passing a list of tuples. If specifying the functions this way, all functions for that column need to be specified as tuples of (name, function) pairs.

df.groupby("dummy").agg({'returns': [('op1', 'sum'), ('op2', 'mean')]})

            op1       op2
1      0.328953  0.032895


df.groupby("dummy")['returns'].agg([('op1', 'sum'), ('op2', 'mean')])

            op1       op2
1      0.328953  0.032895

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