RT Journal Article
JF Software Product Line Conference, International
YR 2011
VO 00
IS
SP 80
TI Automatic Derivation of a Product Performance Model from a Software Product Line Model
A1 Rasha Tawhid,
A1 Dorina C. Petriu,
K1 Model-driven development
K1 Performance analysis
K1 Performance Completion
K1 ATL
K1 MARTE
K1 SPL
K1 UML
AB We propose to integrate performance analysis in the early phases of the model-driven development process for Software Product Lines (SPL). We start with a multi-view UML model of the core family assets representing the commonality and variability between different products, which we call the SPL model. We add another perspective to the SPL model, annotating it with generic performance specifications expressed in the standard UML profile MARTE, recently adopted by OMG. The runtime performance of a product is affected by factors contained in the UML model of the product (derived from the SPL model), but also by external factors depending on the implementation and execution environments. The external factors not contained in the SPL model need to be eventually represented in the performance model. In order to do so, we propose to represent the variability space of different possible implementation and execution environments through a so called "performance completion (PC) feature model". These PC features are mapped to MARTE performance-related stereotypes and attributes attached to the SPL model elements. A first model transformation realized in the Atlas Transformation Language (ATL) derives the UML model of a specific product with concrete MARTE annotations from the SPL model. A second transformation generates a Layered Queueing Network (LQN) performance model for the given product by applying an existing transformation named PUMA, developed in previous work. The proposed technique is illustrated with an e-commerce case study. A LQN model is derived for a product and the impact of different levels of secure communication channels on its performance is analyzed by using the LQN model.
PB IEEE Computer Society, [URL:http://www.computer.org]
SN
LA English
DO 10.1109/SPLC.2011.27
LK http://doi.ieeecomputersociety.org/10.1109/SPLC.2011.27