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I would like to know if I can use native types for number in a pandas DataFrame instead of numpy types.

I try to convert from numpy to native int with this code:

# Convert numpy to native type
df['a'] = df['a'].astype(int)
for index, row in df.iterrows():
    # If this is a numpy type then it has an item method
    if hasattr(df['a'][index], 'item'):
        df['a'][index] = df['a'][index].item()

But when I check the type, it is always a numpy.int64

marked as duplicate by Paul Roub, Brent Washburne, Jacob, HaveNoDisplayName, Bond Jul 22 '15 at 1:34

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  • Hope this will help NUMPY TYPES TO NATIVE TYPES – Tanmaya Meher Jul 21 '15 at 10:55
  • Why are you trying to do this? – hpaulj Jul 21 '15 at 10:59
  • @hpaulj i want my dataframe to be serializable, but numpy.int are not. – cyprieng Jul 21 '15 at 14:25
  • A numpy array stores its data in a contiguous buffer. If dtype is int, those bytes would be the same a Python ints. It's the public interface that gives df['a'][1] that np.int64 wrapper. It is still a numpy object, regardless of dtype. It's the .item() method that takes it out of the numpy wrapper. How are 'serializing' this data? – hpaulj Jul 21 '15 at 16:02
  • Look at np.lib.npyio.format or numpy/lib/format.py to see how np.save writes an array to a file. – hpaulj Jul 21 '15 at 16:08

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