Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am working on the following data structure, from which I am trying to create a ndarray contains all the data:

      instrument         filter             response
-----------------------------------------------------
       spire              250um           array of response
         ...               ...                ...

where the array of response is:
      linenumber      wavelangth      throughput
-----------------------------------------------------
         0     1.894740e+06           0.000e+00
         1     2.000000e+06           1.000e-02
         2     2.026320e+06           3.799e-02
        ...              ....              ....

So, I hope I can turn the data to one ndarray, by using the following code:

import numpy as np

data = [('spire', '250um', [(0, 1.89e6, 0.0), (1,2e6, 1e-2), (2,2.02e6,3.8e-2), ...]),
        ('spire', '350', [ (...), (...), ...]),
        ...,
        ]
table = np.array(data, dtype=[('instrument', '|S32'),
                               ('filter', '|S64'),
                               ('response', [('linenumber', 'i'),
                                             ('wavelength', 'f'),
                                             ('throughput', 'f')])
                              ])

This code raises exception because there is list(tuple, list(tuple)) pattern. After changing the data to:

 data = [('spire', '250um', np.array([(0, 1.89e6, 0.0), (1,2e6, 1e-2), (2,2.02e6,3.8e-2), ...],
                                     dtype=[('linenumber','i'), ('wavelength','f'), ('throughput','f')])),
        ('spire', '350', np.array([ (...), (...), ...],dtype=[...])),
        ...,
        ]]

Then the code can run through, However, the result is wrong because for the response field, only the first entry of the array of response is taken:

>>print table[0]

('spire', '250um', (0,1.89e6,0.0))

instead of the whole array.

My question is, how to properly set the dtype keyword to make this work? in both cases: 1. a nested list of tuples in which list of tuples is contained; 2. a nested list of tuples in which an inhomogeneous ndarray is contained.

Thank you in advance!

share|improve this question

1 Answer 1

up vote 1 down vote accepted

I can get this to work if the response array is of fixed length (perhaps Numpy has to be able to precompute the size of each record in a structured array?). As noted on the Numpy manual page for structured arrays, you can specify the shape for a field in a structured array.

import numpy as np

data = [('spire', '250um', [(0, 1.89e6, 0.0), (1, 2e6, 1e-2)]),
        ('spire', '350',   [(0, 1.89e6, 0.0), (2, 2.02e6, 3.8e-2)])
        ]
table = np.array(data, dtype=[('instrument', '|S32'),
                               ('filter', '|S64'),
                               ('response', [('linenumber', 'i'),
                                             ('wavelength', 'f'),
                                             ('throughput', 'f')], (2,))
                              ])

print table[0]
# gives ('spire', '250um', [(0, 1890000.0, 0.0), (1, 2000000.0, 0.009999999776482582)])
share|improve this answer
    
Thank you, it works. And I just came up with another way, which is not as good as yours: set the dtype of the response to object, which will take the ndarray that defined in data. My solution disables me from access the data column-wise, while yours doesn't. –  user1824372 Oct 5 '13 at 21:02

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.