I've recently run into issues when creating Numpy object arrays using e.g.
a = np.array([c], dtype=np.object)
where c is an instance of some complicated class, and in some cases Numpy tries to access some methods of that class. However, doing:
a = np.empty((1,), dtype=np.object) a = c
solves the issue. I'm curious as to what the difference is between these two internally. Why in the first case might Numpy try and access some attributes or methods of
EDIT: For the record, here is example code that demonstrates the issue:
import numpy as np class Thing(object): def __getitem__(self, item): print "in getitem" def __len__(self): return 1 a = np.array([Thing()], dtype='object')
This prints out
getitem twice. Basically if
__len__ is present in the class, then this is when one can run into unexpected behavior.