Jobs/M2 2015 ADL SAT-based Minimization

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Minimization of Büchi automata using SAT-solving.
Reference id

M2 2015 ADL SAT-based Minimization

Dates

5-6 months in 2015

Research field

Automata Theory

Related project

Spot

Advisor

Alexandre Duret-Lutz

General presentation of the field

The Spot library (http://spot.lip6.fr/) contains many algorithms for translating LTL formulas into Büchi automata, and to simplify these formulas and automata. A recently added technique (in Spot version 1.2) allows us to minimize deterministic Büchi automata using a SAT-solver.

To minimize a n-state deterministic Büchi automaton (an NP-complete problem) we encode its equivalence with a (n-1)-state deterministic Büchi automaton as a SAT problem, and let a SAT solver do the work of finding a solution. If such a solution is found, we try again, looking for a (n-2) state automaton, etc.

Prerequisites

This internship targets students who:

  • have some experience in C++ programming and Unix development (experience with git would be a welcome bonus)
  • like to write clean and useful code (Spot is an open-source library used by other projects)
  • like to optimize
  • would like do get familiar with the amazing world of SAT-solvers and Büchi automata.
Objectives

Presently, our first implementation saves the SAT problem as a huge file before calling the SAT-solver, and it does this for each iteration. The goal of this internship is to improve this situation in multiple ways:

  • implement purely technical optimizations (like direct communication with the SAT solver, bypassing any temporary files)
  • take advantage of feature offered by modern SAT solvers (for instance an "incremental SAT-solver" can be given new constraints after it has found a solution, without needing to restart from scratch)
  • implement optimization to the encoding of the SAT-problem, based on structural properties of the automaton (we have some ideas)

In a second, step, we would like to generalize the existing technique to non-deterministic automata, or to different types of acceptance conditions (i.e., not Büchi).

Benefit for the candidate
References
Place LRDE: How to get to us
Compensation

1000 € gross/month

Future work opportunities
Contact

<adl at lrde . epita . fr> <adl at lrde . epita . fr>