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I have a 1D numpy array of tuples with structured dtype. I am using np.savetxt to write the array to a (compressed) csv file. I would simply like to add the field names from the dtype as the header in the first line. When I print array.dtype I get

array is an object of type:

[('time', '<u8'), ('timeStr', '|S27'), ('person', '|S24'), ...]

I thought it might be simple to just make a tuple ('time', 'timeStr', 'person'...) from array.dtype and add this as the first tuple in array but the dtype object seems awkward to deal with (e.g. you can't iterate over it).

Is there a simple way to do this?

EDIT: senderle pointed out that array.dtype.names exists which solves the first problem. However, ideally I would like to output a gzip compressed csv file without first writing out the full csv file, then compressing it. np.savetxt supports compression natively but adding the header to the numpy array seems to cause a problem as it has the wrong type.

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1 Answer 1

up vote 2 down vote accepted

Here's a simple way to get a tuple of field names:

>>> a = numpy.array([(1, 2, 3), (4, 5, 6)], dtype=[('time', '<u8'), 
                                                   ('timeStr', '|S27'), 
                                                   ('person', '|S24')])
>>> a.dtype.names
('time', 'timeStr', 'person')

Here's a simple way to create a csv file with the data:

>>> with open('data.txt', 'w') as datafile:
...     datafile.write(', '.join(a.dtype.names) + '\n')
...     numpy.savetxt(datafile, a, '%i, %s, %s')

Contents of data.txt afterwards:

time, timeStr, person
1, 2, 3
4, 5, 6

If you're running version 1.7 or later, you could also pass ', '.join(a.dtype.names) to the new header parameter. (But note that this last assertion is untested, because my version of numpy is older.)

You can do basically the same thing with the gzip module. It's possible this might be slower, though, because it might be that numpy no longer handles the compression. Do some testing.

>>> with gzip.GzipFile('data.gz', 'w') as datafile:
...     datafile.write(', '.join(a.dtype.names) + '\n')
...     numpy.savetxt(datafile, a, '%i, %s, %s')
... 

The result is data.gz, which, when decompressed, has the same contents as the ones listed above.

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Oh that's great! I clearly don't understand the right place to read the docs however. Where should I have looked to find dtype.names? It's not at docs.scipy.org/doc/numpy/reference/generated/numpy.dtype.html for example. –  Raphael Jul 23 '12 at 18:15
    
does this work with compressed csv as well? –  Raphael Jul 23 '12 at 18:18
    
Ah, well I suppose you just absorb these things after a while. I would suggest playing around with dir and help in the REPL whenever you're looking for un- or underdocumented features. I see that help(a.dtype) has the information in this case. –  senderle Jul 23 '12 at 18:18
    
Can I just add the tuple to the beginning of the array a? Then I can use the built in compression feature of savetxt. –  Raphael Jul 23 '12 at 18:25
    
@Raphael, only if this is an array of strings, or possibly of python objects (which it isn't, at least in your example). Numpy requires that the datatype of each entry be the same; you can't put a string into a column that contains numbers. –  senderle Jul 23 '12 at 18:27

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