Zinoex / IntervalMDP.jl

GPU-accelerated value iteration for Interval Markov Decision Processes

Home Page:http://www.baymler.com/IntervalMDP.jl/

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IntervalMDP.jl - Interval Markov Decision Processes

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IntervalMDP.jl is a Julia package for modeling and certifying Interval Markov Decision Processes (IMDPs) via Value Iteration.

IMDPs are a generalization of Markov Decision Processes (MDPs) where the transition probabilities are represented by intervals instead of point values, to model uncertainty. IMDPs are also frequently chosen as the model for abstracting the dynamics of a stochastic system, as one may compute upper and lower bounds on transitioning from one region to another.

The aim of this package is to provide a user-friendly interface to solve value iteration for IMDPs with great efficiency. Furthermore, it provides methods for accelerating the computation of the certificate using CUDA hardware.

Features

  • O-maximization and value iteration
  • Dense and sparse matrix support
  • Parametric probability types for customizable precision
  • Multithreaded CPU and CUDA-accelerated value iteration
  • Data loading and writing in formats by various tools (PRISM, bmdp-tool, IMDP.jl)

Installation

This package requires Julia v1.9 or later. Refer to the official documentation on how to install it for your system.

To install IntervalMDP.jl, use the following command inside Julia's REPL:

julia> import Pkg; Pkg.add("IntervalMDP")

If you want to use the CUDA extension, you also need to install CUDA.jl:

julia> import Pkg; Pkg.add("CUDA")

Usage

Here is an example of how to use the package to solve a finite horizon reachability problem for an Interval Markov Chain (IMC) with 3 states and 1 initial state. The goal is to compute the maximum pessimistic probability of reaching state 3 within 10 time steps.

using IntervalMDP

# IMC
prob = IntervalProbabilities(;
    lower = [
        0.0 0.5 0.0
        0.1 0.3 0.0
        0.2 0.1 1.0
    ],
    upper = [
        0.5 0.7 0.0
        0.6 0.5 0.0
        0.7 0.3 1.0
    ],
)

initial_states = [1]  # Initial states are optional
imc = IntervalMarkovChain(prob, initial_states)

target_set = [3]
prop = FiniteTimeReachability(target_set, 10)  # Time steps
spec = Specification(prop, Pessimistic, Maximize)
problem = Problem(imc, spec)

# Solve
V, k, residual = value_iteration(problem)

See Usage for more information about different specifications, using sparse matrices, and CUDA.

Copyright notice

Technische Universiteit Delft hereby disclaims all copyright interest in the program “IntervalMDP.jl” (GPU-accelerated value iteration for Interval Markov Decision Processes) written by the Frederik Baymler Mathiesen. Fred van Keulen, Dean of Mechanical Engineering.

© 2024, Frederik Baymler Mathiesen, HERALD Lab, TU Delft

About

GPU-accelerated value iteration for Interval Markov Decision Processes

http://www.baymler.com/IntervalMDP.jl/

License:MIT License


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