1

I have an excel sheet with a column that is supposed to contain date values but pandas reads it as float64. It has blanks

df:
date_int
15022016
23072017

I want to convert to a datetime object. I do:

df['date_int1'] = df['date_int'].astype(str).fillna('01011900')#To fill the blanks
df['date_int2']=pd.to_datetime(df['date_int1'],format='%d%m%Y')

I get error while converting to datetime:

TypeError: Unrecognized value type: <class 'str'>
ValueError: unconverted data remains: .0
  • df['date_int'].astype(int).astype(str).fillna('01011900') – Wen-Ben Mar 5 at 20:27
  • Thank you, I get: int() argument must be a string, a bytes-like object or a number, not 'NoneType' – Victor Mar 5 at 20:33
1

You shouldn't convert to string until you've filled the NaNs. Otherwise, the NaNs are also stringified, and at the point there is nothing to fill.

df

     date_int
0  15022016.0
1  23072017.0
2         NaN

df['date_int'] = df['date_int'].fillna(1011900, downcast='infer').astype(str)
pd.to_datetime(df['date_int'], format='%d%m%Y', errors='coerce')

0   2016-02-15
1   2017-07-23
2   1900-01-10
Name: date_int, dtype: datetime64[ns]
0

See comment from @Wen-Ben. Convert the data to int first.

df.date_int = df.date_int.astype(int)

Then the rest of the code will work fine.

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