I have a #-separated file with three columns: the first is integer, the second looks like a float, but isn't, and the third is a string. I attempt to load this directly into python with
In : d = pandas.read_csv('resources/names/fos_names.csv', sep='#', header=None, names=['int_field', 'floatlike_field', 'str_field']) In : d Out: <class 'pandas.core.frame.DataFrame'> Int64Index: 1673 entries, 0 to 1672 Data columns: int_field 1673 non-null values floatlike_field 1673 non-null values str_field 1673 non-null values dtypes: float64(1), int64(1), object(1)
pandas tries to be smart and automatically convert fields to a useful type. The issue is that I don't actually want it to do so (if I did, I'd used the
converters argument). How can I prevent
pandas from converting types automatically?