Approximate Mean Value Analysis based on Markov Chain Aggregation by Composition Abstract.pdf
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Approximate Mean Value Analysis based on Markov Chain Aggregation by Composition Abstract
Approximate Mean Value Analysis based on
Markov Chain Aggregation by Composition
Dorina C. Petriu, C. Murray Woodside
Department of Systems and Computer Engineering
Carleton University, Ottawa, Canada, K1S 5B6
email: {petriu|cmw}@sce.carleton.ca
Abstract
Markovian performance models are impractical for large systems because their state
space grows very rapidly with the system size. This paper derives an approximate
Mean Value Analysis (AMVA) solution for Markov models that represent a com-
position of subsystems. The goal is robust scalable analytical approximation. The
approach taken here is to create approximate aggregated Markov chain submod-
els, each representing a view of the Markov chain for the entire system from the
perspective of a selected set D of tagged components, and to derive mean value
equations from them. The analytic solutions of submodels are then combined using
system-level relationships, which must be identified for each system; this is not au-
tomatic but is usually straightforward. The first point of novelty is the method used
to create the aggregate submodels for different sets D, building up each submodel
by composition of the components in D rather than by aggregating the entire state
space. Another point of novelty is the use of partitioned Markov models to obtain
analytic solutions.
Key words: Performance models, Software performance, Compositional modeling,
Markov Chains, Aggregation by composition, Mean Value Analysis
1 Introduction
Markovian performance models based on system states and transitions are
impractical for large systems because of the very rapid increase of the state
space with system size, also known as state explosion. Different approaches
have been identified to circumvent state explosion, such as:
? hierarchical decomposition into smaller submodels, linked by a high-level
model, or by coordination relationships at their boundaries; the solution is
iterated among the submodels
Preprint submitted to Elsevier Science 24 F
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