Ensemble-based modeling abstractions for modern self-optimizing systems
Töpfer, Michal, Abdullah, Milad, Bureš, Tomáš, Hnětynka, Petr, Kruliš, Martin
–arXiv.org Artificial Intelligence
In this paper, we extend our ensemble-based component model DEECo with the capability to use machine-learning and optimization heuristics in establishing and reconfiguration of autonomic component ensembles. We show how to capture these concepts on the model level and give an example of how such a model can be beneficially used for modeling access-control related problem in the Industry 4.0 settings. We argue that incorporating machine-learning and optimization heuristics is a key feature for modern smart systems which are to learn over the time and optimize their behavior at runtime to deal with uncertainty in their environment.
arXiv.org Artificial Intelligence
Sep-11-2023
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