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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.

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4 Answers 4

I guess your problem is that you operate on the whole row when you change the type. If you view as an array of bool, you get all the values, and then you can do astype. However you must reshape.

pnew.view("bool").astype(int).reshape(len(pnew),-1)

Easier is to use .tolist(), but might use more memory and might be slower.

asarray(pnew.tolist()).astype(int)
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Notice that in a recarray each record is treated as a single element, ie for the following array the shape is (3,) not (3, 5).

A = np.array([('joe', 44, True, True, False),
              ('jill', 22, False, False, False),
              ('Jack', 21, True, False, True)],
             dtype=[['name', 'S4'], ['age', int], ['x', bool],
                    ['y', bool], ['z', bool]])
print A.shape
# (3,)

The easiest way to do what you're asking for is probably something like:

tmp = [A[field] for field in ['x', 'y', 'z']]
tmp = np.array(tmp, dtype=int)

You might also be able to use views, but using views for arrays with mixed data types can get kind of tricky.

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You don't actually have to convert the booleans to integers at all. In Python, True and False are actually subclasses of int, so you can simply do all the mathematical operations on them as normal. True is 1 and False is 0.

Proof:

>>> isinstance(True, int)
True
>>> isinstance(False, int)
True
>>> (True + True * 3) / (True + False)
4

Though I will admit, I am not 100% sure about numpy datatypes and how that might come into play with what you're trying to do.

Update

Looking into numpy datatypes a little bit more, they do seem to exhibit similar--but not identical--behavior. numpy.bool literally is the same as bool, it's just the standard Python boolean, so it definitely exhibits all the same behavior and can be used as integers. However, numpy.int32 is separately subclassed from int, so isinstance(numpy.bool(1), numpy.int32) naturally evaluates to False. Maybe you'll have less trouble just going straight to int/numpy.int?

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numpy types != python types, so I'm not sure this holds. Several numpy matrix/vector operations seem to be upset when I pass in booleans. In any case, I'm almost positive I've got to get the record-array into a standard ndarray with a single data type. –  IanSR Dec 10 '12 at 19:36

You can create a new dtype and than use a.astype(new_dtype):

In [44]: a
Out[44]: 
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')])

In [45]: new_dtype = np.dtype([(name, np.int) for name in a.dtype.names])

In [46]: a.astype(new_dtype)
Out[46]: 
array([(0, 0, 1, 0, 0), (1, 1, 0, 1, 1), (1, 1, 0, 1, 1), (1, 1, 1, 1, 1),
       (1, 1, 1, 1, 1), (1, 1, 1, 1, 1)], 
      dtype=[('no_gender', '<i8'), ('no_age', '<i8'), ('no_income', '<i8'),
             ('no_politics', '<i8'), ('no_edu', '<i8')])
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