We present case studies which show how the paradigm of learning-based testing (LBT) can be successfully applied to black-box requirements testing of industrial reactive systems. For this, we apply a new testing tool LBTest, which combines algorithms for incremental black-box learning of Kripke structures with model checking technology. We show how test requirements can be modeled in propositional linear temporal logic extended by finite data types.We then provide benchmark performance results for LBTest applied to three industrial case studies.QC 20140320</p
The Software Reliability group at KTH-CSC has designed and built a novel test platform LBTest for bl...
Learning-based testing is a testing paradigm that combines model-based testing with machine learning...
AbstractThis paper presents some testing approaches based on model checking and using different test...
We present case studies which show how the paradigm of learning-based testing (LBT) can be successfu...
We show how the paradigm of learning-based testing (LBT) can be applied to automate specification-ba...
International audienceWe show how the paradigm of learning-based testing (LBT) can be applied to aut...
Software testing remains one of the most important but expensive approaches to ensure high-quality s...
This thesis concerns the design, implementation and evaluation of a specification based testing arch...
Learning-based testing (LBT) is a paradigm for fully automated requirements testing that combines ma...
This thesis concerns applications of learning-based testing (LBT) in the automotive domain. In this ...
In this thesis, we present techniques for more efficient learning and analysis of system behavior. T...
LBTest is a learning based-testing tool for black box testing, developed by the software reliability...
Learning-based systems (LBS) have become essential in various domains, necessitating the development...
Mealy machines transduce inputs to outputs, based on finite memory. They are often used to model rea...
Context: A Machine Learning based System (MLS) is a software system including one or more components...
The Software Reliability group at KTH-CSC has designed and built a novel test platform LBTest for bl...
Learning-based testing is a testing paradigm that combines model-based testing with machine learning...
AbstractThis paper presents some testing approaches based on model checking and using different test...
We present case studies which show how the paradigm of learning-based testing (LBT) can be successfu...
We show how the paradigm of learning-based testing (LBT) can be applied to automate specification-ba...
International audienceWe show how the paradigm of learning-based testing (LBT) can be applied to aut...
Software testing remains one of the most important but expensive approaches to ensure high-quality s...
This thesis concerns the design, implementation and evaluation of a specification based testing arch...
Learning-based testing (LBT) is a paradigm for fully automated requirements testing that combines ma...
This thesis concerns applications of learning-based testing (LBT) in the automotive domain. In this ...
In this thesis, we present techniques for more efficient learning and analysis of system behavior. T...
LBTest is a learning based-testing tool for black box testing, developed by the software reliability...
Learning-based systems (LBS) have become essential in various domains, necessitating the development...
Mealy machines transduce inputs to outputs, based on finite memory. They are often used to model rea...
Context: A Machine Learning based System (MLS) is a software system including one or more components...
The Software Reliability group at KTH-CSC has designed and built a novel test platform LBTest for bl...
Learning-based testing is a testing paradigm that combines model-based testing with machine learning...
AbstractThis paper presents some testing approaches based on model checking and using different test...