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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?

share|improve this question
    
What exactly are you expecting to happen when you move the masked array? Are you hoping to get only the values that are not masked? Should the no-value entries be converted to nan? –  Luke Aug 7 '12 at 23:32
    
Converted to NaN. I will then convert back to the input's no data value after performing some calculation. –  Jzl5325 Aug 8 '12 at 0:04

1 Answer 1

up vote 2 down vote accepted

First of all, you need to change this line:

ctypes.memmove(data, array.data[:], len(array.data))

to look like this:

ctypes.memmove(data, array.data[:].ctypes.data, len(array.data))

Second, ctypes.memmove has no understanding of masked arrays. Instead, just make a copy with the masked areas set to nan:

masked = array.copy()
masked[array == options['ndv']] = np.nan

...

ctypes.memmove(data, masked.ctypes.data, len(masked))
share|improve this answer
    
Luke, why the first item? Just stumbled onto the second via the numpy docs thanks to your initial comment. Thanks! –  Jzl5325 Aug 8 '12 at 0:29
    
The requirement to use array.ctypes.data is because ctypes has no understanding of numpy arrays (given a numpy array, ctypes does not know how to locate the array data it contains). The attribute array.ctypes.data is just a pointer to the memory array contained within, which ctypes is able to understand. –  Luke Aug 8 '12 at 0:36

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