# How to use numpy with 'None' value in python?

i'm a pretty new user of python and numpy, so i hope my question won't annoy you.

Well, i'd like to calculate the mean of an array in python in this form :

Matrice = [1, 2, None]

I'd just like to have my None value ignored by the numpy.mean calculation but i can't figure out how to do it.

If anybody can help me that would be great!

PS : sorry for my poor english.

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+1: this question can be particularly relevant for arrays that are imported from a database, where values can sometimes be NULL. –  EOL Nov 22 '11 at 22:30

You are looking for masked arrays. Here's an example.

import MA
a = MA.array([1, 2, None], mask = [0, 0, 1])
print "average =", MA.average(a)

Unfortunately, masked arrays aren't thoroughly supported in numpy, so you've got to look around to see what can and can't be done with them.

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a member function that helped a lot was filled. that brought the masked array back to a normal array, filled with a value that I would recognize as invalid (NaN, -9999, whatever your users need). –  mariotomo Apr 22 '10 at 9:20

You can use scipy for that:

import scipy.stats.stats as st
m=st.nanmean(vec)
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Thanks, this is just what I needed! –  max Jan 26 '12 at 9:20
This doesn't work. a = [1,2,None] and then st.nanmean(a) results in a TypeError. –  Nate Jun 26 at 20:58
Yes, you are right, it works on numpy.nan, not on None. It's most useful when calculating the mean on numpy vector. –  Noam Peled Jun 30 at 15:18

You might also be able to kludge with values like NaN or Inf.

In [1]: array([1, 2, None])
Out[1]: array([1, 2, None], dtype=object)

In [2]: array([1, 2, NaN])
Out[2]: array([  1.,   2.,  NaN])

Actually, it might not even be a kludge. Wikipedia says:

NaNs may be used to represent missing values in computations.

Actually, this doesn't work for the mean() function, though, so nevermind. :)

In [20]: mean([1, 2, NaN])
Out[20]: nan
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Actually, mean(a[~isnan(a)]) explicitly choosing all non-NaN values works. –  u0b34a0f6ae Dec 7 '09 at 14:27
@kaizer your comment is a gem. great solution, thanks! –  Agos Jun 16 '11 at 13:46

haven't used numpy, but in standard python you can filter out None using list comprehensions or the filter function

>>> [i for i in [1, 2, None] if i != None]
[1, 2]
>>> filter(lambda x: x != None, [1, 2, None])
[1, 2]

and then average the result to ignore the None

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x != None is usually written x is not None (PEP 8: "Comparisons to singletons like None should always be done with 'is' or 'is not', never the equality operators.") –  EOL Nov 22 '11 at 22:27