3

For pandas agg, is there a way to specify the aggregation function based on the data type? For example, all columns of type object get "first", all floats get "mean", and so on? So as to avoid having to type out all the columns with their respective aggregating functions.

Sample data:

import seaborn as sns
iris = sns.load_dataset('iris')

Desired code:

iris.agg({"object":"first", "float":"mean"})

3 Answers 3

4

I would do:

import seaborn as sns
iris = sns.load_dataset('iris')

agg_method = {'float64': 'mean', 'object':  'count'}

iris.agg({k: agg_method[str(v)] for k, v in iris.dtypes.items()})

Returns:

sepal_length      5.843333
sepal_width       3.057333
petal_length      3.758000
petal_width       1.199333
species         150.000000
dtype: float64
0
0
def a(x):
    if x.dtype == np.dtype('float64'):
        dict[x.name] = "mean"
    elif x.dtype == np.dtype('object'):
        dict[x.name] = "first"


dict = {}

df = df.apply(a)

iris.agg(dict)
5
  • Maybe I don't understand how this works, but this code doesn't work for me. Dec 15, 2021 at 13:39
  • "doesn't work for me"????????? What's the error?
    – Wilian
    Dec 15, 2021 at 13:41
  • Well... what is df in your code? No such object exists. Dec 15, 2021 at 13:42
  • a dataframe of pandas (the tag of your post).
    – Wilian
    Dec 15, 2021 at 13:43
  • Since a is already a function taking one argument, you could use df = df.apply(a), no need for that lambda expression.
    – joanis
    Dec 15, 2021 at 22:33
0

An alternative, that does not rely on agg, is to apply the functions separately and concatenate:

pd.concat([iris.mean(numeric_only=True), 
           iris.select_dtypes('object').count()]
         )

sepal_length      5.843333
sepal_width       3.057333
petal_length      3.758000
petal_width       1.199333
species         150.000000

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