# Issue with true division with Numpy arrays

Suppose you have this array:

``````In [29]: a = array([[10, 20, 30, 40, 50], [14, 28, 42, 56, 70], [18, 36, 54, 72, 90]])

Out[30]: a
array([[ 0,  0,  0,  0,  0],
[14, 28, 42, 56, 70],
[18, 36, 54, 72, 90]])
``````

Now divide the third row by the first one (using from future import division)

``````In [32]: a[0]/a[2]
Out[32]: array([ 0.55555556,  0.55555556,  0.55555556,  0.55555556,  0.55555556])
``````

Now do the same with each row in a loop:

``````In [33]: for i in range(3):
print a[i]/a[2]
[ 0.55555556  0.55555556  0.55555556  0.55555556  0.55555556]
[ 0.77777778  0.77777778  0.77777778  0.77777778  0.77777778]
[ 1.  1.  1.  1.  1.]
``````

Everything looks right. But now, assign the first array a[i]/a[2] to a[i]:

``````In [35]: for i in range(3):
a[i]/=a[2]
....:

In [36]: a
Out[36]:
array([[0, 0, 0, 0, 0],
[0, 0, 0, 0, 0],
[1, 1, 1, 1, 1]])
``````

Alright, no problem. Turns out this is by design. Instead, we should do:

``````In [38]: for i in range(3):
a[i] = a[i]/a[2]
....:

In [39]: a
Out[39]:
array([[0, 0, 0, 0, 0],
[0, 0, 0, 0, 0],
[1, 1, 1, 1, 1]])
``````

But that doesn't work. Why and how can I fix it?

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You can cast the whole array to a `float` array first:

``````a = a.astype('float')
a /= a[2]
``````
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Thanks. Yes, I thought about that but I was wondering about a solution involving the division since it should work as a[i] = a[i]/a[2] –  Robert Smith Oct 20 '12 at 5:23
In case it's not obvious, this creates a new array. There is no way (that I know of) to do it that modifies the old array in place and changes the type. –  mgilson Oct 20 '12 at 5:40
It's not possible to do in general since the old and new types may have different sizes, or the old array might be a view into some other array that shouldn't be modified. –  nneonneo Oct 20 '12 at 5:42
@nneonneo -- true -- sort of. From a python API perspective, that doesn't matter. `ndarray` is a wrapper around a c-array (data). In principle, you could just move the pointer that your ndarray has to a new block of data and from a python perspective, you did the operation "in place". e.g. `a = array(...); b = a; a.magic_type_convert(float); b.dtype is a.dtype #true`. But, I don't know if that operation exists. And provided that `views` are holding the same reference to the data (and I think they are), that would work too. –  mgilson Oct 20 '12 at 5:49
@mgilson Actually, I hadn't considered that. However, numpy arrays are still mutable c = array([1]); id(c) returns 32610992. Then c[0] = 2 changes the array to array([2]) and id(c) still returns 32610992, so I thought it could be doing the same by row. –  Robert Smith Oct 20 '12 at 5:53

"Why doesn't this work" -- The reason it doesn't work is because numpy arrays have a datatype when they're created. Any attempt to put a different type into that array will be cast to the appropriate type. In other words, when you try to put a float into your integer array, numpy casts the float to an int. The reasoning behind this is because numpy arrays are designed to be a homogonous type in order for them to have optimal performance. Put another way, they're implemented as arrays in C. And in C, you can't have an array where 1 element is a `float` and the next is an `int`. (You can have `struct`s which behave like that, but they're not arrays).

Another solution (in addition to the one proposed by @nneonneo) is to specify the array as a float array from the beginning:

``````a = array([[10, 20, 30, 40, 50], [14, 28, 42, 56, 70], [18, 36, 54, 72, 90]], dtype=float)
``````
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Right. Yes, you're absolutely right as a.dtype returns dtype('int64') Then once an array is created, unless explicitly changed, it keeps its data type. Is that it? –  Robert Smith Oct 20 '12 at 5:43
@RobertSmith -- It keeps it's data type no matter what. You can't explicitly change the data type. Doing `a.astype(float)` actually creates a new ndarray which is of type `float`. –  mgilson Oct 20 '12 at 5:44
Oh, got it. Thanks! –  Robert Smith Oct 20 '12 at 5:55

It's not the division that's the issue it's the assignment, ie `a[i] = ...` (which is also used behind the scene when you do `a /= ...`). Try this:

``````>>> a = np.zeros(3, dtype='uint8')
>>> a[:] = [2, -3, 5.9]
>>> print a
[  2 253   5]
``````

When you do `intarray[i] = floatarray[i]` numpy has to truncate the floating point values to get them to fit into `intarray`.

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