I have following data set

enter image description here

I would like to convert float values to int, so i did data.convert_dtypes()

enter image description here

Pandas converted Nan to Na. How can i make it back or prevent pandas to do it? I use data imputation and some algorithmes doesn't support ( 'bool' object has no attribute 'transpose' )

I tried replace, fillna . Replace({pd.NA: np.nan}) convert int to float back again and this is not my solution since i would like to work with int

2 Answers 2


If you need np.nan, which is float, NA integer columns are converted to float columns:

df = df.replace({pd.NA: np.nan})

If you need integers, the only way is to replace NA with some integer:

df = df.replace(pd.NA, -1)
  • Yea, i tried it, it makes all values to float, but i need integers.. Nov 30, 2020 at 5:48
  • @AlexNikitin - Then impossible, if need replace integers Na to NaN get always floats.
    – jezrael
    Nov 30, 2020 at 5:49
  • @AlexNikitin - Only possible replace NaN to some intgers like -1, then get integers, but there are no NaN, no NA values
    – jezrael
    Nov 30, 2020 at 5:52
  • 4
    it does not replace anything :( Nov 27, 2022 at 7:16
  • 1
    For me, only this worked: df[col] = np.where(df[col].isna(), np.nan, df[col]). With "col" being a column name. Using it with a looping for all columns or another way to make it work with all columns at once, should work fine. May 22, 2023 at 19:21

I used df = df.replace(pd.NA, None). The problem is that converts the column type to object, but not None values in the column are still int so you can determine column type like this


Your Answer

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

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