Why apply dtype change in data pandas columns

I have the following framework:

import pandas as pd
import numpy as np
df = pd.DataFrame(dict(A = np.arange(3), 
                         B = np.random.randn(3), 
                         C = ['foo','bar','bah'], 
                         D = pd.Timestamp('20130101')))

print(df)

   A         B    C          D
0  0 -1.087180  foo 2013-01-01
1  1 -1.343424  bar 2013-01-01
2  2 -0.193371  bah 2013-01-01

dtypes for columns:

print(df.dtypes)
A             int32
B           float64
C            object
D    datetime64[ns]
dtype: object

But after use apply, they all change to an object:

print(df.apply(lambda x: x.dtype))
A    object
B    object
C    object
D    object
dtype: object

Why is dtypesforced to the object? I thought that applyonly columns should be counted in.

pandas 0.17.1
python 3.4.3

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1 answer

You can use the parameter reduce=Falseand more details here :

print (df.apply(lambda x: x.dtype, reduce=False))

A             int32
B           float64
C            object
D    datetime64[ns]
dtype: object
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Source: https://habr.com/ru/post/1625268/


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