In performance critical parts, such as you describe. I usually avoid to store the data in a python
list in the first place. A
list is the correct data type to store arbitrary objects in it. In particular every object in the list can have a different type. But you already know that it will be a "list of doubles".
I would recommend to instead use
std::vector<double> already in python. For that you would export
std::vector<double> as a
class_, lets call it
VectorOfDOubles, using boost python. You can make it such that in python you won't see the difference between
VectorOfDoubles, with the major difference beeing that you construct it like
xl = VectorOfDoubles(55) instead of
xl = . You would need a little bit of work to get index-acees working, e.g. xl = 4.5, but for this there exists the boost indexing suite, I recommend version 2, to help you.
Another alternative would be to use numpy ndarrays instead of
list. There exists the boost numpy library that helps you to work with numpy ndarrays from boost python.
But as you say you are new to boost python, both boost numpy and boost indexing suite might be a bit hard. Maybe you first want to settle with making your own subclass of
VectorOfDOubles, and define
double get(int i) and
void set(int i, double val) and then export these two functions (together with size(), the constructor) to python. That requires some changes to your python code, but is easier for beginners.