I have a record array of some half million entries with about 40 dimensions. The dimensions are a mixture of datatypes. I'd like to sub-select 5 boolean dimensions and take blocks of about 1k entries then calculate a covariance matrix to see dimensional correlations. I am totally stuck on how to use `.view()`

or `.astype()`

to do this conversion. The initial sub-selection:

```
p_new[['no_gender', 'no_age', 'no_income', 'no_politics', 'no_edu']]
array([(False, False, True, False, False), (True, True, False, True, True),
(True, True, False, True, True), ...,
(True, True, True, True, True), (True, True, True, True, True),
(True, True, True, True, True)],
dtype=[('no_gender', '|b1'), ('no_age', '|b1'), ('no_income', '|b1'), ('no_politics', '|b1'), ('no_edu', '|b1')])
```

All my conversion attempts collapse my 5 dimensions down to 1 (unwanted!), so rather than going from `(1000,5) dtype=np.bool`

to `(1000,5) dtype=np.int32`

I end up with `(1000,1) dtype=np.int32`

.