P2AMF: Predictive, Probabilistic Architecture Modeling Framework - Enterprise Interoperability
Conference Papers Year : 2013

P2AMF: Predictive, Probabilistic Architecture Modeling Framework

Abstract

In the design phase of business and software system development, it is desirable to predict the properties of the system-to-be. Existing prediction systems do, however, not allow the modeler to express uncertainty with respect to the design of the considered system. In this paper, we propose a formalism, the Predictive, Probabilistic Architecture Modeling Framework (P2AMF), capable of advanced and probabilistically sound reasoning about architecture models given in the form of UML class and object diagrams. The proposed formalism is based on the Object Constraint Language (OCL). To OCL, P2AMF adds a probabilistic inference mechanism. The paper introduces P2AMF, describes its use for system property prediction and assessment, and proposes an algorithm for probabilistic inference.
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hal-01474204 , version 1 (22-02-2017)

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Pontus Johnson, Johan Ullberg, Markus Buschle, Ulrik Franke, Khurram Shahzad. P2AMF: Predictive, Probabilistic Architecture Modeling Framework. 5th International Working Conference on Enterprise Interoperability (IWEI), Mar 2013, Enschede, Netherlands. pp.104-117, ⟨10.1007/978-3-642-36796-0_10⟩. ⟨hal-01474204⟩
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