Artifacts using automata-commons-util version 0.7.1

Data- and utility classes for Prefix-Tree-Acceptors
Last Release on Nov 15, 2023
This artifact provides the implementation of the L* learning algorithm described in the paper "Learning Regular Sets from Queries and Counterexamples" (https://doi.org/10.1016/0890-5401(87)90052-6) by Dana Angluin including variations and optimizations thereof such as the versions based on "On the Learnability of Infinitary Regular Sets" (https://doi.org/10.1006/inco.1995.1070) by Oded Maler and Amir Pnueli or "Inference of finite automata using homing sequences" ...
Last Release on Feb 6, 2025
A collection of utility methods to parse LearnLib specific settings.
Last Release on Feb 6, 2025
This artifact provides the implementation of (a blue-fringe version of) the "regular positive negative inference" (RPNI) learning algorithm as presented in the paper "Inferring regular languages in polynomial update time" (https://doi.org/10.1142/9789812797902_0004) by Jose Oncina and Pedro García, including merging heuristics such as the "evidence-driven state merging" (EDSM) and "minimum description length" (MDL) strategies. More details on these implementations can be ...
Last Release on Feb 6, 2025
An artifact that aggregates all other artifacts of AutomataLib to produce an Uber-JAR that can be used in non-maven environments. Likewise, this single artifact may be used in maven-aware environments to declare a dependency on all AutomataLib artifacts.
Last Release on Mar 11, 2025
Basic support for test driver creation
Last Release on Feb 6, 2025
This artifact provides the implementation of the DHC learning algorithm as described in the paper "Automata Learning with on-the-Fly Direct Hypothesis Construction" (https://doi.org/10.1007/978-3-642-34781-8_19) by Maik Merten, Falk Howar, Bernhard Steffen, and Tiziana Margaria.
Last Release on Feb 6, 2025
Data- and utility classes for Observation Tables
Last Release on Nov 15, 2023
This artifact provides the implementation of the TTT algorithm as described in the paper "The TTT Algorithm: A Redundancy-Free Approach to Active Automata Learning" (https://doi.org/10.1007/978-3-319-11164-3_26) by Malte Isberner, Falk Howar, and Bernhard Steffen.
Last Release on Feb 6, 2025
This artifact provides a visualization implementation based on the JUNG (https://jung.sourceforge.net/) library.
Last Release on Mar 11, 2025