Proceedings of the 28th Annual ACM Symposium on Applied Computing 2013
DOI: 10.1145/2480362.2480690
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Modeling dynamic adaptations using augmented feature models

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“…The modeling of dynamic variability has proved to be a great challenge due to aspects such as the number of variants and their relationships, traceability of the model variants being aligned to the variants represented in the architecture, reconfiguration representation of the variants according to the context of the environment, representation restrictions between variants, and context restrictions. Thus, some studies have extended the feature model to meet these challenges of representing dynamic variability [30][31][32]. However, few tools are supported for representing these extensions, such as the Variamos [24] and the DyMMer [25] tools.…”
Section: General Analysis Of the Solar Educational Ecosystemmentioning
confidence: 99%
“…The modeling of dynamic variability has proved to be a great challenge due to aspects such as the number of variants and their relationships, traceability of the model variants being aligned to the variants represented in the architecture, reconfiguration representation of the variants according to the context of the environment, representation restrictions between variants, and context restrictions. Thus, some studies have extended the feature model to meet these challenges of representing dynamic variability [30][31][32]. However, few tools are supported for representing these extensions, such as the Variamos [24] and the DyMMer [25] tools.…”
Section: General Analysis Of the Solar Educational Ecosystemmentioning
confidence: 99%