-
-
Notifications
You must be signed in to change notification settings - Fork 486
Closed
Labels
enhancementNew feature or requestNew feature or request
Description
Passing gene_type=int
in the GA
class constructor, will result in internal numpy
arrays holding 64-bit integer values. This is well known to numpy users:
>>> type(numpy.array([1], dtype=int)[0])
<class 'numpy.int64'>
This, however, has two major problems:
- It contradicts the fact that Python
int
s are arbitrary precision integers - It prohibits users from using
pygad
to explore bigger state-spaces (e.g. bit-vectors of 256-bits, or even larger in my case)
To solve this problem, a one-liner fix is to add object
in GA.supported_int_types
here. Then, users can pass gene_type=object
in the GA
constructor and handle Python integers in objective functions without worrying about numpy
getting in their way.
ahmedfgad
Metadata
Metadata
Assignees
Labels
enhancementNew feature or requestNew feature or request