Sign up ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

I'd like to convert a list of record arrays -- dtype is (uint32, float32) -- into a numpy array of dtype np.object:

X = np.array(instances, dtype = np.object)

where instances is a list of arrays with data type np.dtype([('f0', '<u4'), ('f1', '<f4')]). However, the above statement results in an array whose elements are also of type np.object:

array([(67111L, 1.0), (104242L, 1.0)], dtype=object)

Does anybody know why?

The following statement should be equivalent to the above but gives the desired result:

X = np.empty((len(instances),), dtype = np.object)
X[:] = instances
array([(67111L, 1.0), (104242L, 1.0), dtype=[('f0', '<u4'), ('f1', '<f4')])

thanks & best regards, peter

share|improve this question

1 Answer 1

up vote 1 down vote accepted

Stéfan van der Walt (a numpy developer) explains:

The ndarray constructor does its best to guess what kind of data you are feeding it, but sometimes it needs a bit of help....

I prefer to construct arrays explicitly, so there is no doubt what is happening under the hood:

When you say something like

instance1=np.array([(67111L,1.0),(104242L,1.0)],dtype=np.dtype([('f0', '<u4'), ('f1', '<f4')]))
instance2=np.array([(67112L,2.0),(104243L,2.0)],dtype=np.dtype([('f0', '<u4'), ('f1', '<f4')]))
Y=np.array(instances, dtype = np.object)

np.array is forced to guess what is the dimension of the array you desire. instances is a list of two objects, each of length 2. So, quite reasonably, np.array guesses that Y should have shape (2,2):

# (2, 2)

In most cases, I think that is what would be desired. However, in your case, since this is not what you desire, you must construct the array explicitly:

X=np.empty((len(instances),), dtype = np.object)
# (2,)

Now there is no question about X's shape: (2, ) and so when you feed in the data

X[:] = instances

numpy is smart enough to regard instances as a sequence of two objects.

share|improve this answer

Your Answer


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.