We present PASS, a tool that analyzes concurrent probabilistic programs, which map to potentially infinite Markov decision processes. PASS is based on predicate abstraction and abstraction refinement and scales to programs far beyond the reach of numerical methods which operate on the full state space of the model. The computational engines we use are SMT solvers to compute finite abstractions, numerical methods to compute probabilities and interpolation as part of abstraction refinement. sf PASS has been successfully applied to network protocols and serves as a test platform for different refinement method
AbstractWe consider models of programs that incorporate probability, dense real-time and data. We pr...
Markov decision processes are a ubiquitous formalism for modelling systems with non-deterministic an...
We consider models of programs that incorporate probability, dense real-time and data. We present a ...
Markov decision processes (MDPs) are natural models of computation in a wide range of applications. ...
Network technology enables smarter and more adaptive computing devices in the context of vehicles, c...
Network technology enables smarter and more adaptive computing devices in the context of vehicles, c...
Markov decision processes (MDPs) are natural models of computation in a wide range of applications. ...
In the field of model checking, abstraction refinement has proved to be an extremely successful meth...
Markov decision processes (MDPs) are natural models of computation in a wide range of applications. ...
We consider models of programs that incorporate probability, dense real-time and data. We present a ...
Abstract. This paper investigates relative precision and optimality of analyses for concurrent proba...
In the field of model checking, abstraction refinement has proved to be an extremely successful meth...
We consider models of programs that incorporate probability, dense real-time and data. We present a ...
We consider models of programs that incorporate probability, dense real-time and data. We present a ...
Markov decision processes are a ubiquitous formalism for modelling systems with non-deterministic an...
AbstractWe consider models of programs that incorporate probability, dense real-time and data. We pr...
Markov decision processes are a ubiquitous formalism for modelling systems with non-deterministic an...
We consider models of programs that incorporate probability, dense real-time and data. We present a ...
Markov decision processes (MDPs) are natural models of computation in a wide range of applications. ...
Network technology enables smarter and more adaptive computing devices in the context of vehicles, c...
Network technology enables smarter and more adaptive computing devices in the context of vehicles, c...
Markov decision processes (MDPs) are natural models of computation in a wide range of applications. ...
In the field of model checking, abstraction refinement has proved to be an extremely successful meth...
Markov decision processes (MDPs) are natural models of computation in a wide range of applications. ...
We consider models of programs that incorporate probability, dense real-time and data. We present a ...
Abstract. This paper investigates relative precision and optimality of analyses for concurrent proba...
In the field of model checking, abstraction refinement has proved to be an extremely successful meth...
We consider models of programs that incorporate probability, dense real-time and data. We present a ...
We consider models of programs that incorporate probability, dense real-time and data. We present a ...
Markov decision processes are a ubiquitous formalism for modelling systems with non-deterministic an...
AbstractWe consider models of programs that incorporate probability, dense real-time and data. We pr...
Markov decision processes are a ubiquitous formalism for modelling systems with non-deterministic an...
We consider models of programs that incorporate probability, dense real-time and data. We present a ...