5

I'm trying to change a format of pd data frame column without changing the type of data. Here is what I have: df = pd.DataFrame({'Age': [24.0, 32.0}])

I'd like to represent Age in 24 32 type or 24.00 32.00 and keep them as floats. Here is what I can do:

df['Age'].map('{:,.2f}'.format)

But this line changes the type of data to object. I was also trying to apply: `

df = df.style.format({'Age': '{:,.2f}'.format})`

but there is something wrong in it. Please help to figure out the right way.

4
  • I'm asking for both ways: 0.00 and without decimals at all, but keeping float type.
    – Jerry
    Jan 26, 2019 at 12:33
  • if i'm not mistaken format is a string method. try to use round method with the number of digits after the dot. i.e round(age,2) or round(age,0)
    – Lior T
    Jan 26, 2019 at 12:38
  • So, when you do df.Age it must be a float itself.
    – Karn Kumar
    Jan 26, 2019 at 12:47
  • @LiorT, thanks, I try df.Age.round(2), but there is again something wrong I do.
    – Jerry
    Jan 26, 2019 at 12:50

3 Answers 3

13

Your dataFrame itself a type float.

Dataframe:

>>> df
    Age
0  24.0
1  32.0

Check DataFrame type:

>>> df.dtypes
Age    float64
dtype: object

check dtype for DataFrame column type:

>>> df.Age
0    24.0
1    32.0
Name: Age, dtype: float64

OR even check like:

>>> df['Age'].dtype.kind
'f'

The way you are using to round up double digit zeros that's correct but converting them again to float will get them remain in single zero as being float.

>>> df['Age'].map('{:,.2f}'.format)
0    24.00
1    32.00
Name: Age, dtype: object

As you are interested keeping either mimic like int values 24, 32 or 24.00 & 32.00, if you are only interested in the display of floats then you can do pd.set_option('display.float_format','{:.0f}'.format), which doesn't actually affect your data.

For Floating Format without leading zeros

>>> pd.set_option('display.float_format','{:.0f}'.format)
>>> df
   Age
0   24
1   32

>>> df.dtypes
Age    float64
dtype: object

For Floating Format

>>> pd.set_option('display.float_format','{:.2f}'.format)
>>> df
    Age
0 24.00
1 32.00
>>> df.dtypes
Age    float64
dtype: object

Alternative way

Set the display precision option:

>>> pd.set_option('precision', 0)
>>> df
   Age
0   24
1   32

>>> df.dtypes
Age    float64
dtype: object
3
  • Thank you. So there is no way to keep these floats in .2f or .0f format as floats?
    – Jerry
    Jan 26, 2019 at 13:12
  • @Jerry, see the updated answer ,, hope that will help.
    – Karn Kumar
    Jan 26, 2019 at 13:25
  • 1
    thank you so much for your help! exactly what I was looking for.
    – Jerry
    Jan 26, 2019 at 20:35
1

I believe using df.round is the best way:

>>> df = pd.DataFrame({'Age': [24.0, 32.0]})
>>> df2 = df.round({'Ages': 2})
>>> print(df2.dtypes)
>>> df2
    Age
0   24.00
1   32.00

https://pandas.pydata.org/pandas-docs/stable/reference/api/pandas.DataFrame.round.html

0

If you want to apply to specific column of the dataframe

df["col_name"] = df["col_name"].apply(lambda x: format(float(x),".2f"))

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge that you have read and understand our privacy policy and code of conduct.

Not the answer you're looking for? Browse other questions tagged or ask your own question.