# In-place type conversion of a NumPy array

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Given a NumPy array of `int32`, how do I convert it to `float32` in place? So basically, I would like to do

``````a = a.astype(numpy.float32)
``````

without copying the array. It is big.

The reason for doing this is that I have two algoithms for the computation of `a`. One of them returns an array of `int32`, the other returns an array of `float32` (and this is inherent to the two different algorithms). All further computations assume that `a` is an array of `float32`.

Currently I do the conversion in a C function called via `ctypes`. Is there a way to do this in Python?

-
Using `ctypes` is as much "in Python" as using `numpy`. :) – Karl Knechtel Dec 8 '10 at 16:40
@Karl: No, because I have to code and compile the C function myself. – Sven Marnach Dec 8 '10 at 16:42
Oh, I see. I think you're probably SOL on this one. – Karl Knechtel Dec 8 '10 at 16:45
Naive question: How can you tell a=a.astype(numpy.float32) is making a copy? Python slows to a crawl and your disk starts thrashing? – Andrew Jan 22 '11 at 20:04
@Andrew: There are many ways to tell if it returns a copy. One of them is to read the documentation. – Sven Marnach Jan 22 '11 at 20:24
show 6 more comments

## 3 Answers

How about:

``````In [1]: x=np.arange(10)

In [2]: x.dtype
Out[2]: dtype('int32')

In [3]: y=x.view('float32')

In [4]: y[:]=x

In [5]: y
Out[5]: array([ 0.,  1.,  2.,  3.,  4.,  5.,  6.,  7.,  8.,  9.], dtype=float32)
``````

(To show the conversion was in-place):

``````In [6]: x
Out[6]:
array([         0, 1065353216, 1073741824, 1077936128, 1082130432,
1084227584, 1086324736, 1088421888, 1090519040, 1091567616])
``````
-
Great, thanks! It's obvious once someone pointed it out. – Sven Marnach Dec 9 '10 at 9:19
Note for those (like me) that want conversion between dtype of different byte-size (e.g. 32 to 16 bits): This method fails because y.size <> x.size. Logical once you think about it :-( – Juh_ Jun 12 '12 at 9:17
``````a = a.astype(numpy.float32, copy=False)
``````

numpy astype has a copy flag. Why shouldn't we use it ?

-
Once this parameter is supported in a NumPy release, we could of course use it, but currently it's only available in the development branch. And at the time I asked this question, it didn't exist at all. – Sven Marnach May 17 '12 at 19:08

You can change the array type without converting like this:

``````a.dtype = numpy.float32
``````

but first you have to change all the integers to something that will be interpreted as the corresponding float. A very slow way to do this would be to use python's `struct` module like this:

``````def toi(i):
return struct.unpack('i',struct.pack('f',float(i)))[0]
``````

...applied to each member of your array.

But perhaps a faster way would be to utilize numpy's ctypeslib tools (which I am unfamiliar with)

- edit -

Since ctypeslib doesnt seem to work, then I would proceed with the conversion with the typical `numpy.astype` method, but proceed in block sizes that are within your memory limits:

``````a[0:10000] = a[0:10000].astype('float32').view('int32')
``````

...then change the dtype when done.

Here is a function that accomplishes the task for any compatible dtypes (only works for dtypes with same-sized items) and handles arbitrarily-shaped arrays with user-control over block size:

``````import numpy

def astype_inplace(a, dtype, blocksize=10000):
oldtype = a.dtype
newtype = numpy.dtype(dtype)
assert oldtype.itemsize is newtype.itemsize
for idx in xrange(0, a.size, blocksize):
a.flat[idx:idx + blocksize] = \
a.flat[idx:idx + blocksize].astype(newtype).view(oldtype)
a.dtype = newtype

a = numpy.random.randint(100,size=100).reshape((10,10))
print a
astype_inplace(a, 'float32')
print a
``````
-
Thanks for your answer. Honestly, I don't think this is very useful for big arrays -- it is way too slow. Reinterpreting the data of the array as a different type is easy -- for example by calling `a.view(numpy.float32)`. The hard part is actually converting the data. `numpy.ctypeslib` only helps with reinterpreting the data, not with actually converting it. – Sven Marnach Dec 8 '10 at 17:39
ok. I wasn't sure what your memory/processor limitations were. See my edit. – Paul Dec 8 '10 at 18:16
Thanks for the update. Doing it blockwise is a good idea -- probably the best you can get with the current NumPy interface. But in this case, I will probably stick to my current ctypes solution. – Sven Marnach Dec 8 '10 at 20:21