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!