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from numpy import *
a=array([0.,0.001,0.002])
b=array([[1,11],[2,22],[3,33]])
b[:,1]=a
print b

I expected as a result:

array([[  1. , 0. ],[  2. ,  0.001 ],[  3. , 0.002 ]])

But I got:

array([[ 1 , 0 ], [ 2 , 0 ] , [ 3 , 0 ]])

To obtain desired result I had to type:

from numpy import *
a=array([0.,0.001,0.002])
b=array([[1,11],[2,22],[3,33]])
b=b.astype(float)
b[:,1]=a
print b

Is it a bug? Shouldn't assignment automatically make numpy array a float type?

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1  
It's not really possible to change the dtype of an array in-place. The internal memory layout of an int32 array isn't compatible with that of a float64 array. –  user2357112 Feb 2 '14 at 0:05

2 Answers 2

up vote 3 down vote accepted

No, it is not a bug. From docs:

Note that assignments may result in changes if assigning higher types to lower types (like floats to ints) or even exceptions (assigning complex to floats or ints)

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Thanks! I think this fact is not well known, I mean I was googling quite a lot, and in simple tutorials for beginners, and even for intermediate users that is not exposed :) Thank you once again :) –  Aleksander_B Feb 2 '14 at 0:12
    
It is actually a very core concept in programming, IMHO, not only in Python. The differences are there across languages, but it's pretty much present. It's not often you'll see them in tutorials, but they are covered extensively in the beginning parts of most good books, regardless of language covered. :) –  The Laughing Man Feb 2 '14 at 0:20
    
Yeah, syntax is not everything I guess, the basics of hardware handling are also important. Could you (BK201) mention some title of such a good book? :) –  Aleksander_B Feb 2 '14 at 0:30

The behavior seems intuitive to me, array b remains the same dtype before and after the assignment, so dtype of a needs to be changed to dtype of b.

>>> a.astype(b.dtype) # and when you convert a to dtype of b you get:
array([0, 0, 0])
>>> 
>>> b[:, 1] = a.astype(b.dtype) # I believe this is what is going on under the hood.
>>> b
array([[1, 0],
       [2, 0],
       [3, 0]])
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