SPLASH 2022
Mon 5 - Sat 10 December 2022 Auckland, New Zealand

\begin{abstract}
As the size of software and system models grows, scalability issues in the current generation of model management languages (e.g. transformation, validation) and their supporting tooling become more prominent. To address this challenge, execution engines of model management programs need to become more efficient in their use of system resources. This paper presents an approach for partial loading of large models that reside in graph-database-backed model repositories. This approach leverages sophisticated static analysis of model management programs and auto-generation of graph (Cypher) queries to load only relevant model elements instead of naively loading the entire models into memory. Our experimental evaluation shows that our approach enables model management programs to process larger models, faster, and with a reduced memory footprint compared to the state of the art.
\end{abstract}

Tue 6 Dec

Displayed time zone: Auckland, Wellington change

08:57 - 10:00
Session 1. Modeling Languages and TransformationSLE at Seminar Room G007
Chair(s): Takuo Watanabe Tokyo Institute of Technology
08:57
24m
Talk
Selective Traceability for Rule-Based Model-to-Model TransformationsResearch PaperIn Person
SLE
Qurat Ul Ain Ali University of York, Dimitris Kolovos University of York, Konstantinos Barmpis University of York
DOI
09:21
24m
Talk
Partial Loading of Repository-Based Models through Static AnalysisResearch PaperIn Person
SLE
Sorour Jahanbin University of York, Dimitris Kolovos University of York, Simos Gerasimou University of York, Gerson Sunyé University of Nantes
DOI
09:45
15m
Talk
Neural Language Models and Few Shot Learning for Systematic Requirements Processing in MDSENew ideas / Vision paperIn Person
SLE
Vincent Bertram RWTH Aachen University, Miriam Boß RWTH Aachen University, Evgeny Kusmenko RWTH Aachen University, Imke Helene Nachmann RWTH Aachen University, Bernhard Rumpe RWTH Aachen University, Danilo Trotta RWTH Aachen University, Louis Wachtmeister RWTH Aachen University
DOI