# pandas rounding when converting float to integer

I've got a pandas DataFrame with a float (on decimal) index which I use to look up values (similar to a dictionary). As floats are not exactly the value they are supposed to be multiplied everything by 10 and converted it to integers `.astype(int)` before setting it as index. However this seems to do a `floor` instead of rounding. Thus 1.999999999999999992 is converted to 1 instead of 2. Rounding with the `pandas.DataFrame.round()` method before does not avoid this problem as the values are still stored as floats.

``````idx = np.arange(1,3,0.001)
s = pd.Series(range(2000))
s.index=idx
print(s[2.022])
``````

trying with converting to integers:

``````idx_int = idx*1000
idx_int = idx_int.astype(int)
s.index = idx_int
for i in range(1000,3000):
print(s[i])
``````

the output is always a bit random as the 'real' value of an integer can be slightly above or below the wanted value. In this case the index contains two times the value 1000 and does not contain the value 2999.

You are right, `astype(int)` does a conversion toward zero:

‘integer’ or ‘signed’: smallest signed int dtype

from pandas.to_numeric documentation (which is linked from `astype()` for numeric conversions).

If you want to round, you need to do a float round, and then convert to int:

``````df.round(0).astype(int)
``````

Use other rounding functions, according your needs.

the output is always a bit random as the 'real' value of an integer can be slightly above or below the wanted value

Floats are able to represent whole numbers, making a conversion after `round(0)` lossless and non-risky, check here for details.

• Did you mean `floor` rather than `ceil`? (Though actually, it's neither: it's a truncation operation - i.e., it rounds towards zero, rather than towards positive infinity (ceil) or towards negative infinity (floor).) Mar 7, 2018 at 14:22
• @MarkDickinson: right. I did correctly on the first version, but than I confused smallest with 'ceil' (but meaning 'floor'). Verified, "smallest" is toward zero. Thank you. Mar 7, 2018 at 14:30
• Also, if you're worried about NaNs, `df.round(0).astype(pd.Int64Dtype())` :) (stackoverflow.com/questions/21287624/…) Sep 29, 2020 at 23:25
• @TomaszGandor, problem with using pd.Int64Dtype() is cannot subesquently fillna('') as typical to render a table with blankspace for NaN. Throws: "TypeError <UI cannot be converted to an IntegerDtype". have a workaround? Nov 13, 2021 at 16:06
• @alancalvitti - this may not be the right approach (mangling data for visualization), but probably recasting it again `.astype(object).fillna('')` could do the trick. Nov 13, 2021 at 21:02

If I understand right you could just perform the rounding operation followed by converting it to an integer?

``````s1 = pd.Series([1.2,2.9])
s1 = s1.round().astype(int)
``````

Which gives the output:

``````0    1
1    3
dtype: int32
``````

In case the data frame contains both, numeric and non-numeric values and you only want to touch numeric fields:

``````df = df.applymap(lambda x: int(round(x, 0)) if isinstance(x, (int, float)) else x)
``````
• This is very useful to round all the elements in a Dataframe Dec 14, 2021 at 16:18
• Select_dtypes is an alternative to doing list comprehension: `df.select_dtypes(include=np.number).applymap(lambda x: int(round(x, 0)))`
– tbrk
Jul 13, 2022 at 14:58

There is a potential that NA as a float type exists in the dataframe. so an alternative solution is: `df.fillna(0).astype('int')`