I am running the exact same code on both windows and mac, with python 3.5 64 bit.

On windows, it looks like this:

>>> import numpy as np
>>> preds = np.zeros((1, 3), dtype=int)
>>> p = [6802256107, 5017549029, 3745804973]
>>> preds[0] = p
Traceback (most recent call last):
  File "<pyshell#13>", line 1, in <module>
    preds[0] = p
OverflowError: Python int too large to convert to C long

However, this code works fine on my mac. Could anyone help explain why or give a solution for the code on windows? Thanks so much!

  • 1
    You're sure both are 64 bit? can you test on linux?
    – Tim
    Jul 11, 2016 at 18:53
  • Even if both systems are on 64-bit Python, are they both on 64-bit NumPy? Jul 11, 2016 at 18:53
  • Another stackoverflow question explains 'why'. On Windows long is 32bit and on Unux-like long is 64bit. Please see the question stackoverflow.com/questions/384502/…
    – VladimirM
    Jul 11, 2016 at 18:57
  • 8
    Use dtype='int64' or dtype=np.int64. The int type uses a C long, which is always 32-bit on Windows.
    – Eryk Sun
    Jul 11, 2016 at 19:34
  • to Tim: Yes, both are 64bit. I do not have a linux machine, sorry. to user2357112: Yes, both are 64bit python and numpy. to VladimirM: Thanks! I think that question answers mine! to eryksun: Thanks! It works!
    – packybear
    Jul 11, 2016 at 21:39

5 Answers 5


You can use dtype=np.int64 instead of dtype=int

  • Thanks, I just had to use the unsigned type np.uint64 (to store hashes).
    – Axel Puig
    May 1, 2020 at 13:21
  • 3
    I tried using both np.int64 and np.uint64 to store 109323892912381287389218291378123872293293923929392929289283928 Neither work Jul 14, 2020 at 21:41
  • 1
    If you need to store insanely large numbers exactly then numpy probablly isn't the tool for you. If you can tolerate loss of precision then you can use the float type, alternatively it's possible to have a numpy array of python objects ( stackoverflow.com/questions/6141853/… ) but at that point some would question why you are using a numpy array at all.
    – plugwash
    Jan 21, 2021 at 14:11

You'll get that error once your numbers are greater than sys.maxsize:

>>> p = [sys.maxsize]
>>> preds[0] = p
>>> p = [sys.maxsize+1]
>>> preds[0] = p
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
OverflowError: Python int too large to convert to C long

You can confirm this by checking:

>>> import sys
>>> sys.maxsize

To take numbers with larger precision, don't pass an int type which uses a bounded C integer behind the scenes. Use the default float:

>>> preds = np.zeros((1, 3))
  • 3
    if you do get a number larger than this, how to tackle? Feb 3, 2018 at 17:51
  • 4
    @VeronicaWenqianCheng Don't pass an int dtype, use the default float. Feb 5, 2018 at 11:20
  • 3
    what if it needs to passed as an index which then needs to be int ?
    – fireball.1
    Jul 27, 2018 at 0:15
  • 1
    I don't understand your question clearly. The index or the value itself? In the case of the value, use a float. You can easily convert to int in plain Python if you need the value as an int. Jul 29, 2018 at 0:07
  • 2
    MosesKoledoye I think @fireball means what if a non-float is required as an index argument and hence cannot be a float (which you say is required to circumvent this problem)? Should one do int(float(x)) - surely not?
    – jtlz2
    Jul 10, 2019 at 14:02

Could anyone help explain why

Numpy arrays normally* have fixed size elements, including integers of various sizes, single or double precision floating point numbers, fixed length byte and Unicode strings and structures built up from the aforementioned types.

In Python 2 a python "int" was equivalent to a C long. In Python 3 an "int" is an arbitrary precision type but numpy still uses "int" it to represent the C type "long" when creating arrays.

The size of a C long is platform dependent. On windows it is always 32-bit. On unix-like systems it is normally 32 bit on 32 bit systems and 64 bit on 64 bit systems.

or give a solution for the code on windows? Thanks so much!

Choose a data type whose size is not platform dependent. You can find the list at https://docs.scipy.org/doc/numpy/reference/arrays.scalars.html#arrays-scalars-built-in the most sensible choice would probably be np.int64

* Numpy does allow arrays of python objects, but I don't think they are widely used.


I got the same error while trying to convert a object type column (actually string) to integer type.

This DID NOT work:

df['var1'] = df['var1'].astype(int)

This worked:

df['var1'] = df['var1'].apply(lambda x: int(x))
  • I don't like having to use this, but it worked for me too. For some reason, a 10-digit number was causing .astype to fail, whereas the .apply worked. Thanks.
    – autonopy
    Sep 28, 2023 at 20:49

Convert to float:

import pandas as pd

df = pd.DataFrame()
l_var_l = [8258255190131389999999000003296, 50661]
df['temp'] = l_var_l
df['temp'] = df['temp'].astype(int)

Above fails with error:

OverflowError: Python int too large to convert to C long.

Now try with float conversion:

df['temp'] = df['temp'].astype(float)

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