(C++ Template Library to Predict, Control, Learn Behaviors, and Represent Learnable Knowledge using On/Off Policy Reinforcement Learning)
RLLib is a lightweight C++ template library that implements incremental
, standard
, and gradient temporal-difference
learning algorithms in Reinforcement Learning. It is an optimized library for robotic applications and embedded devices that operates under fast duty cycles (e.g., < 30 ms). RLLib has been tested and evaluated on RoboCup 3D soccer simulation agents, physical NAO V4 humanoid robots, and Tiva C series launchpad microcontrollers to predict, control, learn behaviors, and represent learnable knowledge. The implementation of the RLLib library is inspired by the RLPark API, which is a library of temporal-difference learning algorithms written in Java.
- Off-policy prediction algorithms:
GTD(λ)
GTD(λ)True
GQ(λ)
- Off-policy control algorithms:
Q(λ)
Greedy-GQ(λ)
Softmax-GQ(λ)
Off-PAC (can be used in on-policy setting)
- On-policy algorithms:
TD(λ)
TD(λ)AlphaBound
TD(λ)True
Sarsa(λ)
Sarsa(λ)AlphaBound
Sarsa(λ)True
Sarsa(λ)Expected
Actor-Critic (continuous actions, discrete actions, discounted reward settting, averaged reward settings, and so on)
- Supervised learning algorithms:
Adaline
IDBD
K1
SemiLinearIDBD
Autostep
- Policies:
Random
RandomX%Bias
Greedy
Epsilon-greedy
Boltzmann
Normal
Softmax
- Dot product: An efficient implementation of the dot product for tile coding based feature representations (with culling traces).
- Benchmarking environments:
Mountain Car
Mountain Car 3D
Swinging Pendulum
Continuous Grid World
Bicycle
Cart Pole
Acrobot
Non-Markov Pole Balancing
Helicopter
- Optimization:
Optimized for very fast duty cycles (e.g., with culling traces, RLLib has been tested on
the Robocup 3D simulator agent
, and onthe NAO V4 (cognition thread)
). - Usage: The algorithm usage is very much similar to RLPark, therefore, swift learning curve.
- Examples: There are a plethora of examples demonstrating on-policy and off-policy control experiments.
- Visualization: We provide a Qt4 based application to visualize benchmark problems.
Open AI Gym is a toolkit for developing and comparing reinforcement learning algorithms. We have developed a bridge between Gym and RLLib to use all the functionalities provided by Gym, while writing the agents (on/off-policy) in RLLib. The directory, openai_gym, contains our bridge as well as RLLib agents that learn and control the classic control environments.
-
Extension for Tiva C Series EK-TM4C123GXL LaunchPad, and Tiva C Series TM4C129 Connected LaunchPad microcontrollers.
-
Tiva C series launchpad microcontrollers: https://github.com/samindaa/csc688
RLLib is a C++ template library. The header files are located in the include
directly. You can simply include/add this directory from your projects, e.g., -I./include
, to access the algorithms.
To access the control algorithms:
#include "ControlAlgorithm.h"
To access the predication algorithms:
#include "PredictorAlgorithm"
To access the supervised learning algorithms:
#include "SupervisedAlgorithm.h"
RLLib uses the namespace:
using namespace RLLib
RLLib provides a flexible testing framework. Follow these steps to quickly write a test case.
- To access the testing framework:
#include "HeaderTest.h"
#include "HeaderTest.h"
RLLIB_TEST(YourTest)
class YourTest Test: public YourTestBase
{
public:
YourTestTest() {}
virtual ~Test() {}
void run();
private:
void testYourMethod();
};
void YourTestBase::testYourMethod() {/** Your test code */}
void YourTestBase::run() { testYourMethod(); }
- Add
YourTest
to thetest/test.cfg
file. - You can use
@YourTest
to execute onlyYourTest
. For example, if you need to execute only MountainCar test cases, use @MountainCarTest.
We are using CMAKE >= 2.8.7 to build and run the test suite.
- mkdir build
- cd build; cmake ..
- make -j
RLLib provides a QT5 based Reinforcement Learning problems and algorithms visualization tool named RLLibViz
. Currently RLLibViz visualizes following problems and algorithms:
-
On-policy:
- SwingPendulum problem with continuous actions. We use AverageRewardActorCritic algorithm.
-
Off-policy:
- ContinuousGridworld and MountainCar problems with discrete actions. We use Off-PAC algorithm.
-
In order to run the visualization tool, you need to have QT4.8 installed in your system.
-
In order to install RLLibViz:
- Change directory to
visualization/RLLibViz
- qmake RLLibViz.pro
- make -j
- ./RLLibViz
- Change directory to
- Ubuntu >= 11.04
- Windows (Visual Studio 2013)
- Mac OS X
- Variable action per state.
- Non-linear algorithms.
- Deep learning algorithms.
- Dynamic Role Assignment using General ValueFunctions
- Humanoid Robots and Spoken Dialog Systems for Brief Health Interventions
Saminda Abeyruwan, PhD ([email protected], [email protected])