# Numpy arrays, fancy indexing, complex numbers

The following code multiplies a part of the array by a number

``````def mul_by_num(a,b):
a[0:2] *= b

import numpy as np
a = np.ones(5,dtype=np.float64)
mul_by_num(a,1.0)
mul_by_num(a,1j) #Generates a warning (and casts to float!)
``````

The second call generates a warning

``````-c:2: ComplexWarning: Casting complex values to real discards the imaginary part
``````

The question is, what is the most pythonic way to multiply parts of numpy arrays by complex/real numbers without messing with dtypes? I do not really want to convert an array to complex from the beginning, but the program in principle can get a complex input.

EDIT:

I do not care about copying the full array, casting it to complex; But I want to avoid checking dtypes (i.e., np.float32, np.float64, np.complex, np.int etc.)

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I think you'll find that there isn't one. –  Ignacio Vazquez-Abrams Aug 15 '12 at 6:54
@IgnacioVazquez-Abrams I added a comment to the question, that I just want to avoid the full check of possible dtypes. For example, a + b works just fine, but assigning a part of the array does not. –  Ivan Oseledets Aug 15 '12 at 6:59

You're going to need to convert the array to complex at some point, otherwise it won't be able to hold complex numbers.

The easiest way to convert an array to complex is to add `0j`:

``````if (np.iscomplexobj(b)):
a = a + 0j
a[0:2] *= b
``````

note: not `a += 0j` as that will attempt to modify the array inplace, which won't work if it isn't complex already.

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That is ok, but what if b is real, and I do not want to convert to complex in this case? –  Ivan Oseledets Aug 15 '12 at 8:44
@IvanOseledets in that case check with `np.iscomplexobj(b)`. –  ecatmur Aug 15 '12 at 9:20

Since increasing the speed of calculating, numpy array makes sure that having same type. May be you can try the python list or casting it.

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