I have to create a numpy.ndarray from array-like data with int, float or complex numbers.

I hope to do it with numpy.asarray function.

I don't want to give it a strict dtype argument, because I want to convert complex values to complex64 or complex128, floats to float32 or float64, etc.

But if I just simply run numpy.ndarray(some_unknown_data) and look at the dtype of its result, how can I understand, that the data is numeric, not object or string or something else?


You could check if the dtype of the array is a sub-dtype of np.number. For example:

>>> np.issubdtype(np.complex128, np.number)
>>> np.issubdtype(np.int32, np.number)
>>> np.issubdtype(np.str_, np.number)
>>> np.issubdtype('O', np.number) # 'O' is object

Essentially, this just checks whether the dtype is below 'number' in the NumPy dtype hierarchy:

enter image description here


Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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