Detecting feature influences to quality attributes in large and partially measured spaces using smart sampling and dynamic learning
Loading...
Identifiers
Publication date
Reading date
Collaborators
Advisors
Tutors
Editors
Journal Title
Journal ISSN
Volume Title
Publisher
Elsevier
Share
Center
Department/Institute
Abstract
Emergent application domains (e.g., Edge Computing/Cloud/B5G systems) are complex to be built manually. They are characterised by high variability and are modelled by large Variability Models (VMs), leading to large configuration spaces. Due to the high number of variants present in such systems, it is challenging to find the best-ranked product regarding particular Quality Attributes (QAs) in a short time.
Moreover, measuring QAs sometimes is not trivial, requiring a lot of time and resources, as is the case of the energy footprint of software systems — the focus of this paper. Hence, we need a mechanism to analyse how features and their interactions influence energy footprint, but without measuring all configurations. While practical, sampling and predictive techniques base their accuracy on uniform spaces or some initial domain knowledge, which are not always possible to achieve. Indeed, analysing
the energy footprint of products in large configuration spaces raises specific requirements that we explore in this work. This paper presents SAVRUS (Smart Analyser of Variability Requirements in Unknown Spaces), an approach for sampling and dynamic statistical learning without relying on initial domain knowledge of large and partially QA-measured spaces. SAVRUS reports the degree to which features and pairwise interactions influence a particular QA, like energy efficiency. We validate and
evaluate SAVRUS with a selection of likewise systems, which define large searching spaces containing scattered measurements.
Description
Bibliographic citation
Daniel-Jesus Munoz, Mónica Pinto, Lidia Fuentes, Detecting feature influences to quality attributes in large and partially measured spaces using smart sampling and dynamic learning, Knowledge-Based Systems, Volume 270, 2023, 110558, ISSN 0950-7051, https://doi.org/10.1016/j.knosys.2023.110558. (https://www.sciencedirect.com/science/article/pii/S0950705123003088)
Collections
Endorsement
Review
Supplemented By
Referenced by
Creative Commons license
Except where otherwised noted, this item's license is described as Atribución 4.0 Internacional










