Unmasking of masked Numpy array changes masked values to 0's

I mask my array where values are nodata (-9999), calculate the mean on axis = 0 and then unmask my data array, but then my nodata values are changed into 0's, but now how to make a distinction between "calculated mean 0's" and "nodata 0's". See following code example:

``````In [1]: import numpy.ma as ma
...: x = [[0.,1.,-9999.,3.,4.],[0.,2.,-9999,4.,5.]]
...: x
Out[1]: [[0.0, 1.0, -9999.0, 3.0, 4.0], [0.0, 2.0, -9999, 4.0, 5.0]]

In [2]: mx = ma.masked_values(x, -9999.)
...: mx
Out[2]:
[[0.0 1.0 -- 3.0 4.0]
[0.0 2.0 -- 4.0 5.0]],
[[False False  True False False]
[False False  True False False]],
fill_value = -9999.0)

In [3]: mean = mx.mean(axis=0)
...: mean
Out[3]:
masked_array(data = [0.0 1.5 -- 3.5 4.5],
mask = [False False  True False False],
fill_value = 1e+20)

...: mean
Out[4]:
masked_array(data = [0.0 1.5 0.0 3.5 4.5],
mask = [False False False False False],
fill_value = 1e+20)
``````

But I would like to have an output similar to my input, with nodata values as -9999., like:

``````In [4]: mean.mask = ma.nomask
...: mean
Out[4]:
masked_array(data = [0.0 1.5 -9999. 3.5 4.5],
mask = [False False False False False],
fill_value = 1e+20)
``````
-

``````>>> mean = mx.mean(axis=0)
@Mattijn Actually you don't even need the `mean.mask = ma.nomask` since assigning to a masked value automatically sets the mask to `False`. Updated the answer. – Viktor Kerkez Sep 17 '13 at 9:05