2017 Association for Computing Machinery. Probabilistic model checking is a formal verification technique that has been applied successfully in a variety of domains, providing identification of system errors through quantitative verification of stochastic system models. One domain that can benefit from probabilistic model checking is cloud computing, which must provide highly reliable and secure computational and storage services to large numbers of mission-critical software systems. For real-world domains like cloud computing, external system factors and environmental changes must be estimated accurately in the form of probabilities in system models; inaccurate estimates for the model probabilities can lead to invalid verification results....
Random phenomena occur in many applications: security, communication protocols, distributed algorith...
Historically, functional verification and performance evaluation have been two distinct stages in th...
We present a general framework for applying machine-learning algorithms to the verification of Marko...
Abstract. We elaborate on the ingredients of a model-driven approach for the dynamic provisioning of...
Abstract. This tutorial presents an overview of model checking for both discrete and continuous-time...
This tutorial provides an introduction to probabilistic model checking, a technique for automaticall...
This tutorial presents an overview of model checking for both discrete and continuous-time Markov ch...
This paper presents a retrospective view on probabilistic model checking. We focus on Markov decisio...
This tutorial provides an introduction to probabilistic model checking, a technique for automaticall...
Abstract. This tutorial provides an introduction to probabilistic model checking, a technique for au...
Probabilistic model checking is a widely used technique supporting the verification of properties ov...
Probabilistic model checking is a mathematically based technique widely used to verify whether syste...
Quantitative model checking has become an indispensable tool to analyze performance and dependabilit...
Quantitative model checking has become an indispensable tool to analyze performance and dependabilit...
Statistical Model Checking (SMC) is a computationally very efficient verification technique based on...
Random phenomena occur in many applications: security, communication protocols, distributed algorith...
Historically, functional verification and performance evaluation have been two distinct stages in th...
We present a general framework for applying machine-learning algorithms to the verification of Marko...
Abstract. We elaborate on the ingredients of a model-driven approach for the dynamic provisioning of...
Abstract. This tutorial presents an overview of model checking for both discrete and continuous-time...
This tutorial provides an introduction to probabilistic model checking, a technique for automaticall...
This tutorial presents an overview of model checking for both discrete and continuous-time Markov ch...
This paper presents a retrospective view on probabilistic model checking. We focus on Markov decisio...
This tutorial provides an introduction to probabilistic model checking, a technique for automaticall...
Abstract. This tutorial provides an introduction to probabilistic model checking, a technique for au...
Probabilistic model checking is a widely used technique supporting the verification of properties ov...
Probabilistic model checking is a mathematically based technique widely used to verify whether syste...
Quantitative model checking has become an indispensable tool to analyze performance and dependabilit...
Quantitative model checking has become an indispensable tool to analyze performance and dependabilit...
Statistical Model Checking (SMC) is a computationally very efficient verification technique based on...
Random phenomena occur in many applications: security, communication protocols, distributed algorith...
Historically, functional verification and performance evaluation have been two distinct stages in th...
We present a general framework for applying machine-learning algorithms to the verification of Marko...