I am doing my Masters project on robotic's sensorimotor online learning using reinforcement learning methods (Q,sarsa,TD(λ),Actor-Critic,R,etc). I am currently designing the framework on which both higher level reinforcement learning and lower level robot API control will be using.
Since the states are robot sensor dependant and may (will) increase exponentially, I will be allocating them on the heap. Since this can create alot of problems, bugs, etc, and since parallelization (i.e. threading) is an aspect of reinforcement learning I want to explore, I am not yet sure of what kind of smart pointers to use.
Designing my own template/class for a smart pointer will take time and debugging, which I do not have. So, I am wondering, should I use STL's
auto_ptr? I see they have issues being used in vectors. Should I use
boost::shared_ptr? The states will have to be shared among many classes and algorithms. Or should I use
boost::ptr_vector? Since the states will reside in a task container class in a vector, would this be sufficient? The states will have to be shared, copyable, referencable, serializable, non constant, thread-safe and will not be deleted. Also, memory space and computation time are important.
What do you recommend as the best smart ptr implementation for such a task ?
It seems like I will have to try using boost::ptr_vector with class State, and if this proves unefficient, then use std::vector < std::unique_ptr > and enable 0X. Thank you all for your answers and suggestions !