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This package provides a core interface for working with Markov decision processes (MDPs) and partially observable Markov decision processes (POMDPs). The POMDPTools package acts as a "standard library" for the POMDPs.jl interface, providing implementations of commonly-used components such as policies, belief updaters, distributions, and simulators.
Our goal is to provide a common programming vocabulary for:
- Expressing problems as MDPs and POMDPs.
- Writing solver software.
- Running simulations efficiently.
POMDPs.jl integrates with other ecosystems:
- Python can be used to define and solve MDPs and POMDPs via the quickpomdps package or through tables directly via pyjulia.
- POMDPTools provides two-way integration with CommonRLInterface and therefore with the JuliaReinforcementLearning packages.
- The SymbolicMDPs package provides an interface to work with PDDL models.
For a detailed introduction, check out our Julia Academy course! For help, please post in GitHub Discussions tab. We welcome contributions from anyone! See CONTRIBUTING.md for information about contributing.
POMDPs.jl and associated solver packages can be installed using Julia's package manager. For example, to install POMDPs.jl and the QMDP solver package, type the following in the Julia REPL:
using Pkg; Pkg.add("POMDPs"); Pkg.add("QMDP")
To run a simple simulation of the classic Tiger POMDP using a policy created by the QMDP solver, you can use the following code (note that POMDPs.jl is not limited to discrete problems with explicitly-defined distributions like this):
using POMDPs, QuickPOMDPs, POMDPTools, QMDP
m = QuickPOMDP(
states = ["left", "right"],
actions = ["left", "right", "listen"],
observations = ["left", "right"],
initialstate = Uniform(["left", "right"]),
discount = 0.95,
transition = function (s, a)
if a == "listen"
return Deterministic(s) # tiger stays behind the same door
else # a door is opened
return Uniform(["left", "right"]) # reset
end
end,
observation = function (s, a, sp)
if a == "listen"
if sp == "left"
return SparseCat(["left", "right"], [0.85, 0.15]) # sparse categorical distribution
else
return SparseCat(["right", "left"], [0.85, 0.15])
end
else
return Uniform(["left", "right"])
end
end,
reward = function (s, a)
if a == "listen"
return -1.0
elseif s == a # the tiger was found
return -100.0
else # the tiger was escaped
return 10.0
end
end
)
solver = QMDPSolver()
policy = solve(solver, m)
rsum = 0.0
for (s,b,a,o,r) in stepthrough(m, policy, "s,b,a,o,r", max_steps=10)
println("s: $s, b: $([s=>pdf(b,s) for s in states(m)]), a: $a, o: $o")
global rsum += r
end
println("Undiscounted reward was $rsum.")
For more examples and examples with visualizations, reference the Examples and Gallery of POMDPs.jl Problems sections of the documentaiton.
In addition to the above-mentioned Julia Academy course, detailed documentation and examples can be found here.
Many packages use the POMDPs.jl interface, including MDP and POMDP solvers, support tools, and extensions to the POMDPs.jl interface. POMDPs.jl and all packages in the JuliaPOMDP project are fully supported on Linux. OSX and Windows are supported for all native solvers*, and most non-native solvers should work, but may require additional configuration.
POMDPs.jl itself contains only the core interface for communicating about problem definitions; these packages contain implementations of commonly-used components:
Package |
Build |
Coverage |
---|---|---|
POMDPTools (hosted in this repository) | ||
ParticleFilters |
Many models have been implemented using the POMDPs.jl interface for various projects. This list contains a few commonly used models:
Package |
Build |
Coverage |
---|---|---|
POMDPModels | ||
LaserTag | ||
RockSample | ||
TagPOMDPProblem | ||
DroneSurveillance | ||
ContinuumWorld | ||
VDPTag2 | ||
RoombaPOMDPs (Roomba Localization) |
Package |
Build/Coverage |
Online/ Offline |
Continuous States - Actions |
Rating3 |
---|---|---|---|---|
DiscreteValueIteration | |
Offline | N-N | ★★★★★ |
LocalApproximationValueIteration | |
Offline | Y-N | ★★ |
GlobalApproximationValueIteration | |
Offline | Y-N | ★★ |
MCTS (Monte Carlo Tree Search) | |
Online | Y (DPW)-Y (DPW) | ★★★★ |
Package |
Build/Coverage |
Online/ Offline |
Continuous States-Actions-Observations |
Rating3 |
---|---|---|---|---|
QMDP (suboptimal) | |
Offline | N-N-N | ★★★★★ |
FIB (suboptimal) | |
Offline | N-N-N | ★★ |
BeliefGridValueIteration | |
Offline | N-N-N | ★★ |
SARSOP* | |
Offline | N-N-N | ★★★★ |
NativeSARSOP | |
Offline | N-N-N | ★★★★ |
ParticleFilterTrees (SparsePFT, PFT-DPW) | |
Online | Y-Y2-Y | ★★★ |
BasicPOMCP | |
Online | Y-N-N1 | ★★★★ |
ARDESPOT | |
Online | Y-N-N1 | ★★★★ |
AdaOPS | |
Online | Y-N-Y | ★★★★ |
MCVI | |
Offline | Y-N-Y | ★★ |
POMDPSolve* | |
Offline | N-N-N | ★★★ |
IncrementalPruning | |
Offline | N-N-N | ★★★ |
POMCPOW | |
Online | Y-Y2-Y | ★★★ |
AEMS | |
Online | N-N-N | ★★ |
PointBasedValueIteration | |
Offline | N-N-N | ★★ |
1: Will run, but will not converge to optimal solution
2: Will run, but convergence to optimal solution is not proven, and it will likely not work well on multidimensional action spaces. See also https://github.com/michaelhlim/VOOTreeSearch.jl.
Package |
Build/Coverage |
Continuous States |
Continuous Actions |
Rating3 |
---|---|---|---|---|
TabularTDLearning | |
N | N | ★★ |
DeepQLearning | |
Y1 | N | ★★★ |
1: For POMDPs, it will use the observation instead of the state as input to the policy.
3 Subjective rating; File an issue if you believe one should be changed
- ★★★★★: Reliably Computes solution for every problem.
- ★★★★: Works well for most problems. May require some configuration, or not support every edge of interface.
- ★★★: May work well, but could require difficult or significant configuration.
- ★★: Not recently used (unknown condition). May not conform to interface exactly, or may have package compatibility issues
- ★: Not known to run
Package |
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DESPOT |
*These packages require non-Julia dependencies
If POMDPs is useful in your research and you would like to acknowledge it, please cite this paper:
@article{egorov2017pomdps,
author = {Maxim Egorov and Zachary N. Sunberg and Edward Balaban and Tim A. Wheeler and Jayesh K. Gupta and Mykel J. Kochenderfer},
title = {{POMDP}s.jl: A Framework for Sequential Decision Making under Uncertainty},
journal = {Journal of Machine Learning Research},
year = {2017},
volume = {18},
number = {26},
pages = {1-5},
url = {http://jmlr.org/papers/v18/16-300.html}
}