I have a numpy array which contains no data values. I mask those no data values so that they do not influence my calculations using:

```
array = numpy.ma.masked_values(array, options['ndv'], copy=False)
```

I then use memmove to get the numpy array into a shared ctypes array using:

```
def ndarray_to_shmem(array):
""" Converts a numpy.ndarray to a multiprocessing.Array object.
The memory is copied, and the array is flattened.
"""
arr = array.reshape((-1, ))
data = RawArray(_numpy_to_ctypes[array.dtype.type],
arr.size)
ctypes.memmove(data, array.data[:], len(array.data))
return data
```

Which returns the following stack trace:

```
ctypes.memmove(data, array.data[:], len(array.data))
ctypes.ArgumentError: argument 2: <type 'exceptions.TypeError'>: wrong type
```

Is it possible to use memmove to move the masked array into a shared, ctypes array?