A Metascience Study of the Low-Code Scientific Field
August 12, 2024 Β· Declared Dead Β· π Journal of Object Technology
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Authors
Mauro Dalle Lucca Tosi, Javier Luis CΓ‘novas Izquierdo, Jordi Cabot
arXiv ID
2408.05975
Category
cs.SE: Software Engineering
Cross-listed
cs.DL
Citations
2
Venue
Journal of Object Technology
Last Checked
4 months ago
Abstract
In the last years, model-related publications have been exploring the application of modeling techniques across various domains. Initially focused on UML and the Model-Driven Architecture approach, the literature has been evolving towards the usage of more general concepts such as Model-Driven Development or Model-Driven Engineering. More recently, however, the term "low-code" has taken the modeling field by storm, largely due to its association with several highly popular development platforms. The research community is still discussing the differences and commonalities between this emerging term and previous modeling-related concepts, as well as the broader implications of low-code on the modeling field. In this paper, we present a metascience study of Low-Code. Our study follows a two-fold approach: (1) to analyze the composition and growth (e.g., size, diversity, venues, and topics) of the emerging Low-Code community; and (2) to explore how these aspects differ from those of the "classical" model-driven community. Ultimately, we hope to trigger a discussion on the current state and potential future trajectory of the low-code community, as well as the opportunities for collaboration and synergies between the low-code and modeling communities.
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