# numpy: using operator - with arrays containing None

I have a list of numbers which I put into a numpy array:

``````>>> import numpy as np
>>> v=np.array([10.0, 11.0])
``````

then I want to subtract a number from each value in the array. It can be done like this with numpy arrays:

``````>>> print v - 1.0
[  9.  10.]
``````

Unfortunately, my data often contains missing values, represented by `None`. For this kind of data I get this error:

``````>>> v=np.array([10.0, 11.0, None])
>>> print v - 1.0
Traceback (most recent call last):
File "<stdin>", line 1, in <module>
TypeError: unsupported operand type(s) for -: 'NoneType' and 'float'
``````

What I would like to get for the above example is:

`````` [  9.  10.  None]
``````

How can I achieve it in an easy and efficient way?

-

My recommendation is to either use masked arrays:

``````v = np.ma.array([10., 11, 0],mask=[0, 0, 1])
print v - 10
>>> [0.0 1.0 --]
``````

or NaNs

``````v = np.array([10.,11,np.nan])
print v - 10
>>> [  0.   1.  nan]
``````

I actually prefer NaNs as missing data indicators.

-
These options are also much better than using None in that OP's array is actually of type `object` and hence very inefficient, raster than a float array. –  Dougal Feb 13 '13 at 16:55
Thanks a lot, using `numpy.nan` sounds like the way to go, more practical than masked arrays. When would the masked arrays be better than representing missing data indicator as numpy.nan? –  piokuc Feb 13 '13 at 18:41
I think masked arrays could be better for doing some operations like say sums and averages of arrays (then the missing data is treated properly). Also, I guess you can distinguish actual NaNs from missing data. Otherwise (I'd say pretty much always) nans are better IMO. –  sega_sai Feb 13 '13 at 18:46
Thanks a lot for this! –  piokuc Feb 13 '13 at 19:26