Reliability and dependability modeling can be employed during many stages of analysis of a computing system to gain insights into its critical behaviors. To provide useful results, realistic models of systems are often necessarily large and complex. Numerical analysis of these models presents a formidable challenge because the sizes of their state-space descriptions grow exponentially in proportion to the sizes of the models. On the other hand, simulation of the models requires analysis of many trajectories in order to compute statistically correct solutions. This dissertation presents a novel framework for performing both numerical analysis and simulation. The new numerical approach computes bounds on the solutions of transient me...
This dissertation concerns analytical methods for assessing the performance of concurrent systems. M...
We discuss the recently introduced multilevel algorithm for the steady-state solution of Markov chai...
AbstractThe complexity of stochastic models of real-world systems is usually managed by abstracting ...
Reliability and dependability modeling can be employed during many stages of analysis of a computing...
Reliability and dependability modeling can be employed during many stages of analysis of a computing...
Purpose – Markov chains and queuing theory are widely used analysis, optimization and decision-makin...
Continuous time Markov chains (CTMCs) are among the most fundamental mathematical structures used fo...
Continuous time Markov chains (CTMCs) are among the most fundamental mathematical structures used fo...
High-level modeling formalisms are increasingly popular tools for studying complex systems. Given a ...
One of the roadblocks to greater application of Markov chains is that non-numerically sophisticated ...
This work considers different aspects of model-based performance- and dependability analysis. This r...
Bibliography: leaves 149-157.This dissertation concerns. analytical methods for assessing the perfor...
One of the roadblocks to greater application of Markov chains is that non-numerically sophisticated ...
Markov decision processes continue to gain in popularity for modeling a wide range of applications r...
This paper presents an algorithm for finding approximately optimal policies in very large Markov dec...
This dissertation concerns analytical methods for assessing the performance of concurrent systems. M...
We discuss the recently introduced multilevel algorithm for the steady-state solution of Markov chai...
AbstractThe complexity of stochastic models of real-world systems is usually managed by abstracting ...
Reliability and dependability modeling can be employed during many stages of analysis of a computing...
Reliability and dependability modeling can be employed during many stages of analysis of a computing...
Purpose – Markov chains and queuing theory are widely used analysis, optimization and decision-makin...
Continuous time Markov chains (CTMCs) are among the most fundamental mathematical structures used fo...
Continuous time Markov chains (CTMCs) are among the most fundamental mathematical structures used fo...
High-level modeling formalisms are increasingly popular tools for studying complex systems. Given a ...
One of the roadblocks to greater application of Markov chains is that non-numerically sophisticated ...
This work considers different aspects of model-based performance- and dependability analysis. This r...
Bibliography: leaves 149-157.This dissertation concerns. analytical methods for assessing the perfor...
One of the roadblocks to greater application of Markov chains is that non-numerically sophisticated ...
Markov decision processes continue to gain in popularity for modeling a wide range of applications r...
This paper presents an algorithm for finding approximately optimal policies in very large Markov dec...
This dissertation concerns analytical methods for assessing the performance of concurrent systems. M...
We discuss the recently introduced multilevel algorithm for the steady-state solution of Markov chai...
AbstractThe complexity of stochastic models of real-world systems is usually managed by abstracting ...