@article{romero2024_uvlhub_open_science, title = {UVLHub: A feature model data repository using UVL and open science principles}, journal = {Journal of Systems and Software}, pages = {112150}, year = {2024}, issn = {0164-1212}, doi = {https://doi.org/10.1016/j.jss.2024.112150}, url = {https://www.sciencedirect.com/science/article/pii/S016412122400195X}, author = {David Romero-Organvidez and José A. Galindo and Chico Sundermann and Jose-Miguel Horcas and David Benavides}, keywords = {Feature models, Software product line, Variability, Dataset, Uvl}, abstract = {Feature models are the de facto standard for modelling variabilities and commonalities in features and relationships in software product lines. They are the base artefacts in many engineering activities, such as product configuration, derivation, or testing. Concrete models in different domains exist; however, many are in private or sparse repositories or belong to discontinued projects. The dispersion of knowledge of feature models hinders the study and reuse of these artefacts in different studies. The Universal Variability Language (UVL) is a community effort textual feature model language that promotes a common way of serialising feature models independently of concrete tools. Open science principles promote transparency, accessibility, and collaboration in scientific research. Although some attempts exist to promote feature model sharing, the existing solutions lack open science principles by design. In addition, existing and public feature models are described using formats not always supported by current tools. This paper presents , a repository of feature models in UVL format. provides a front end that facilitates the search, upload, storage, and management of feature model datasets, improving the capabilities of discontinued proposals. Furthermore, the tool communicates with Zenodo –one of the most well-known open science repositories– providing a permanent save of datasets and following open science principles. includes existing datasets and is readily available to include new data and functionalities in the future. It is maintained by three active universities in variability modelling.} }
TY - JOUR T1 - UVLHub: A feature model data repository using UVL and open science principles AU - Romero-Organvidez, David AU - Galindo, José A. AU - Sundermann, Chico AU - Horcas, Jose-Miguel AU - Benavides, David JO - Journal of Systems and Software SP - 112150 PY - 2024 DA - 2024/07/01/ SN - 0164-1212 DO - https://doi.org/10.1016/j.jss.2024.112150 UR - https://www.sciencedirect.com/science/article/pii/S016412122400195X KW - Feature models KW - Software product line KW - Variability KW - Dataset KW - Uvl AB - Feature models are the de facto standard for modelling variabilities and commonalities in features and relationships in software product lines. They are the base artefacts in many engineering activities, such as product configuration, derivation, or testing. Concrete models in different domains exist; however, many are in private or sparse repositories or belong to discontinued projects. The dispersion of knowledge of feature models hinders the study and reuse of these artefacts in different studies. The Universal Variability Language (UVL) is a community effort textual feature model language that promotes a common way of serialising feature models independently of concrete tools. Open science principles promote transparency, accessibility, and collaboration in scientific research. Although some attempts exist to promote feature model sharing, the existing solutions lack open science principles by design. In addition, existing and public feature models are described using formats not always supported by current tools. This paper presents , a repository of feature models in UVL format. provides a front end that facilitates the search, upload, storage, and management of feature model datasets, improving the capabilities of discontinued proposals. Furthermore, the tool communicates with Zenodo –one of the most well-known open science repositories– providing a permanent save of datasets and following open science principles. includes existing datasets and is readily available to include new data and functionalities in the future. It is maintained by three active universities in variability modelling. ER -
David Romero-Organvidez, José A. Galindo, Chico Sundermann, Jose-Miguel Horcas, David Benavides, UVLHub: A feature model data repository using UVL and open science principles, Journal of Systems and Software, 2024, 112150, ISSN 0164-1212, https://doi.org/10.1016/j.jss.2024.112150. (https://www.sciencedirect.com/science/article/pii/S016412122400195X) Abstract: Feature models are the de facto standard for modelling variabilities and commonalities in features and relationships in software product lines. They are the base artefacts in many engineering activities, such as product configuration, derivation, or testing. Concrete models in different domains exist; however, many are in private or sparse repositories or belong to discontinued projects. The dispersion of knowledge of feature models hinders the study and reuse of these artefacts in different studies. The Universal Variability Language (UVL) is a community effort textual feature model language that promotes a common way of serialising feature models independently of concrete tools. Open science principles promote transparency, accessibility, and collaboration in scientific research. Although some attempts exist to promote feature model sharing, the existing solutions lack open science principles by design. In addition, existing and public feature models are described using formats not always supported by current tools. This paper presents , a repository of feature models in UVL format. provides a front end that facilitates the search, upload, storage, and management of feature model datasets, improving the capabilities of discontinued proposals. Furthermore, the tool communicates with Zenodo –one of the most well-known open science repositories– providing a permanent save of datasets and following open science principles. includes existing datasets and is readily available to include new data and functionalities in the future. It is maintained by three active universities in variability modelling. Keywords: Feature models; Software product line; Variability; Dataset; Uvl
Romero-Organvidez, D., Galindo, J. A., Sundermann, C., Horcas, J.-M., & Benavides, D. (2024). UVLHub: A feature model data repository using UVL and open science principles. Journal of Systems and Software, 2024, 112150. https://doi.org/10.1016/j.jss.2024.112150
@article{benavides2024uvl, author = {David Benavides and Chico Sundermann and Kevin Feichtinger and José A. Galindo and Rick Rabiser and Thomas Thüm}, title = {UVL: Feature Modelling with the Universal Variability Language}, year = {2024}, url = {http://dx.doi.org/10.2139/ssrn.4764657}, note = {SSRN Electronic Journal}, doi = {10.2139/ssrn.4764657} }
TY - JOUR AU - Benavides, David AU - Sundermann, Chico AU - Feichtinger, Kevin AU - Galindo, José A. AU - Rabiser, Rick AU - Thüm, Thomas TI - UVL: Feature Modelling with the Universal Variability Language PY - 2024 UR - http://dx.doi.org/10.2139/ssrn.4764657 DO - 10.2139/ssrn.4764657 JO - SSRN Electronic Journal ER -
David Benavides, Chico Sundermann, Kevin Feichtinger, José A. Galindo, Rick Rabiser and Thomas Thüm, Uvl: Feature Modelling with the Universal Variability Language. http://dx.doi.org/10.2139/ssrn.4764657
Benavides, D., Sundermann, C., Feichtinger, K., Galindo, J. A., Rabiser, R., & Thüm, T. (2024). UVL: Feature Modelling with the Universal Variability Language. SSRN Electronic Journal. http://dx.doi.org/10.2139/ssrn.4764657