How do I convert a float NumPy array into an int NumPy array?
4 Answers
Use the astype
method.
>>> x = np.array([[1.0, 2.3], [1.3, 2.9]])
>>> x
array([[ 1. , 2.3],
[ 1.3, 2.9]])
>>> x.astype(int)
array([[1, 2],
[1, 2]])
-
35Just make sure you don't have
np.inf
ornp.nan
in your array, since they have surprising results. For example,np.array([np.inf]).astype(int)
outputsarray([-9223372036854775808])
.– GarrettJan 22, 2015 at 8:42 -
On my machine,
np.array([np.inf]).astype(int)
,np.array([-np.inf]).astype(int)
, andnp.array([np.nan]).astype(int)
all return the same thing. Why? May 14, 2018 at 20:47 -
1@BallpointBen:
nan
andinf
are floating-point values and can't be meaningfully converted to int. As the comment before yours notes, there will be surprising behavior, and I don't think the precise behavior is well-defined. If you want to mapnan
andinf
to certain values, you need to do that yourself.– BrenBarnMay 15, 2018 at 18:21 -
1
-
1Note that although this does convert the array to ints, @fhtuft's answer that may result in less surprises Apr 15, 2020 at 18:07
Some numpy functions for how to control the rounding: rint, floor,trunc, ceil. depending how u wish to round the floats, up, down, or to the nearest int.
>>> x = np.array([[1.0,2.3],[1.3,2.9]])
>>> x
array([[ 1. , 2.3],
[ 1.3, 2.9]])
>>> y = np.trunc(x)
>>> y
array([[ 1., 2.],
[ 1., 2.]])
>>> z = np.ceil(x)
>>> z
array([[ 1., 3.],
[ 2., 3.]])
>>> t = np.floor(x)
>>> t
array([[ 1., 2.],
[ 1., 2.]])
>>> a = np.rint(x)
>>> a
array([[ 1., 2.],
[ 1., 3.]])
To make one of this in to int, or one of the other types in numpy, astype (as answered by BrenBern):
a.astype(int)
array([[1, 2],
[1, 3]])
>>> y.astype(int)
array([[1, 2],
[1, 2]])
-
2Exactly what I was looking for.
astype
is often too generic, and I think it probably is more useful when doing intx - inty conversions. When I want to do float - int conversion being able to choose the kind of rounding is a nice feature.– BakuriuSep 11, 2012 at 7:03 -
15So the simplest way to safely convert almost-ints like
7.99999
to ints like8
, isnp.rint(arr).astype(int)
?– endolithOct 12, 2012 at 18:53 -
-
2
-
you can use np.int_
:
>>> x = np.array([[1.0, 2.3], [1.3, 2.9]])
>>> x
array([[ 1. , 2.3],
[ 1.3, 2.9]])
>>> np.int_(x)
array([[1, 2],
[1, 2]])
If you're not sure your input is going to be a Numpy array, you can use asarray
with dtype=int
instead of astype
:
>>> np.asarray([1,2,3,4], dtype=int)
array([1, 2, 3, 4])
If the input array already has the correct dtype, asarray
avoids the array copy while astype
does not (unless you specify copy=False
):
>>> a = np.array([1,2,3,4])
>>> a is np.asarray(a) # no copy :)
True
>>> a is a.astype(int) # copy :(
False
>>> a is a.astype(int, copy=False) # no copy :)
True