12

My task is to read data from excel to dataframe. The data is a bit messy and to clean that up I've done:

df_1 = pd.read_excel(offers[0])
df_1 = df_1.rename(columns={'Наименование [Дата Файла: 29.05.2019 время: 10:29:42 ]':'good_name', 
                     'Штрихкод':'barcode', 
                     'Цена шт. руб.':'price',
                     'Остаток': 'balance'
                    })
df_1 = df_1[new_columns]
# I don't know why but without replacing NaN with another char code doesn't work
df_1.barcode = df_1.barcode.fillna('_')
# remove all non-numeric characters
df_1.barcode = df_1.barcode.apply(lambda row: re.sub('[^0-9]', '', row))
# convert str to numeric
df_1.barcode = pd.to_numeric(df_1.barcode, downcast='integer').fillna(0)
df_1.head()

It returns column barcode with type float64 (why so?)

0    0.000000e+00
1    7.613037e+12
2    7.613037e+12
3    7.613034e+12
4    7.613035e+12
Name: barcode, dtype: float64

Then I try to convert that column to integer.

df_1.barcode = df_1.barcode.astype(int)

But I keep getting silly negative numbers.

df_1.barcode[0:5]
0             0
1   -2147483648
2   -2147483648
3   -2147483648
4   -2147483648

Name: barcode, dtype: int32

Thanks to @Will and @micric eventually I've got a solution.

df_1 = pd.read_excel(offers[0])
df_1 = df_1[new_columns]
# replacing NaN with 0, it'll help to convert the column explicitly to dtype integer
df_1.barcode = df_1.barcode.fillna('0')
# remove all non-numeric characters
df_1.barcode = df_1.barcode.apply(lambda row: re.sub('[^0-9]', '', row))
# convert str to integer
df_1.barcode = pd.to_numeric(df_1.barcode, downcast='integer')

Resume:

  • pd.to_numeric converts NaN to float64. As a result from column with both NaN and not-Nan values we should expect column dtype float64.
  • Check size of number you're dealing with. int32 has its limit, which is 2**32 = 4294967296. Thanks a lot for your help, guys!
2
  • Could you tell me the output of print(pd.__version__)?
    – Erfan
    Commented May 31, 2019 at 8:42
  • pandas version is 0.20.3 Commented May 31, 2019 at 11:11

4 Answers 4

14

That number is a 32 bit lower limit. Your number is out of the int32 range you are trying to use, so it returns you the limit (notice that 2**32 = 4294967296, divided by 2 2147483648 that is your number).

You should use astype(int64) instead.

1
7

I ran into the same problem as OP, using

astype(np.int64)

solved mine, see the link here.

I like this solution because it's consistent with my habit of changing the column type of pandas column, maybe someone could check the performance of these solutions.

2
  • 1
    Thanks a lot. This solved my problem. I was utterly confounded by this behavior as I was trying to convert an abnormally long ID field to integer.
    – Bowen Liu
    Commented Sep 24, 2020 at 19:35
  • Please be warned that this solution did not work for me while the accepted answer did. I have no idea why astype(np.int64) changed 1 to 0 seemingly at random.
    – robbwh
    Commented Jan 20, 2022 at 16:50
4

Many questions in one.

So your expected dtype...

pd.to_numeric(df_1.barcode, downcast='integer').fillna(0)

pd.to_numeric downcast to integer would give you an integer, however, you have NaNs in your data and pandas needs to use a float64 type to represent NaNs

1
  • You're right, many thanks for your help. After editing code so it fills NaN first <df_1.barcode = df_1.barcode.fillna(1)>, then converts column to numeric, code works as it supposed, meaning eventually I've got output <barcode 9820 non-null int64> Commented May 31, 2019 at 11:08
0

There is another way to achieve the correct solution using plain Python:

import numpy as np
# take an integer larger than 2**64
a = np.array([1e22])
a.astype(np.int64)

Will give you array([-9223372036854775808]).

np.array(int(a)) # right value, but with dtype=object

The operation above will give you the correct integer value but with dtype object, but you can still treat as a numeric array and apply NumPy ufuncs to the array such as np.mean, etc.

Conclusion: Python integers can be larger than NumPy integers. Another way around this is to keep the numbers as floats. But be always careful when doing math with very large numbers!

>>> int(1e100)
10000000000000000159028911097599180468360808563945281389781327557747838772170381060813469985856815104

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.