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I am trying to create a structured array in the below format:

import numpy as np
x = np.array([(2009, (('USA', 10.), ('CHN', 12.))), (2010, (('BRA', 10.), 
    ('ARG', 12.)))], dtype=[('year', '<i4'), [('iso','a3'), ('value','<f4')]])

but it keeps telling me to enter a valid data type and I am not sure how to proceed. I am able to do this just fine if the nested array is in the same format, i.e. all integers:

np.array([('ABC', ((1, 2, 3), (1, 2, 3))), ('CBA', ((3, 2, 1), (3, 2, 1)))],
    dtype='a3, (2, 3)i')

Any help or suggestions would be greatly appreciated.

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1 Answer 1

You need to give the second element of your dtype a name, try:

>>> dtype=[('year', '<i4'), ('item_name', [('iso','a3'), ('value','<f4')])]
>>> np.zeros(3, dtype=dtype)
array([(0, ('', 0.0)), (0, ('', 0.0)), (0, ('', 0.0))], 
      dtype=[('year', '<i4'), ('item_name', [('iso', '|S3'), ('value', '<f4')])])

Forgive me for editorializing, but I find rec-arrays hard enough to work with without the nesting, would you loose a lot if you just flattened the dtype?

update:

You have one more level of nesting than I realized. Try this:

>>> dtype=[('year', '<i4'), ('countries', [('c1', [('iso','a3'), ('value','<f4')]), ('c2', [('iso','a3'), ('value','<f4')])])]
>>> np.array([(2009, (('USA', 10.), ('CHN', 12.))), (2010, (('BRA', 10.), ('ARG', 12.)))], dtype)
array([(2009, (('USA', 10.0), ('CHN', 12.0))),
    (2010, (('BRA', 10.0), ('ARG', 12.0)))], 
    dtype=[('year', '<i4'), ('countries', [('c1', [('iso', '|S3'), ('value', '<f4')]), ('c2', [('iso', '|S3'), ('value', '<f4')])])])
share|improve this answer
    
still no luck: np.array([(2009, (('USA', 10.), ('CHN', 12.))), (2010, (('BRA', 10.), ('ARG', 12.)))], dtype=[('year', '<i4'), ('item_name', [('iso','a3'), ('value','<f4')])]) Now I get cannot set an array element with a sequence. –  hotshotiguana Mar 28 '12 at 15:21
    
I most likely will flatten the object down the line because it is easier to get the data from a database, but this is a question that comes up a fair amount when I work with Numpy, so I thought I would ask it. –  hotshotiguana Mar 28 '12 at 15:27

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