MODELS 2024
Sun 22 - Fri 27 September 2024 Linz, Austria
Fri 27 Sep 2024 11:27 - 11:45 at HS 1 - MDE and AI (2) Chair(s): Sébastien Mosser

In model-driven engineering, the concrete syntax of a domain-specific modeling language (DSML) is fundamental as it constitutes the primary point of interaction between the user and the DSML. Nevertheless, the conventional one-size-fits-all approach to concrete syntax often undermines the effectiveness of DSMLs, as it fails to accommodate the diverse constraints and specific requirements inherent to diverse users and usage contexts. Such shortcomings can lead to a significant decline in the performance, usability, and efficiency of DSMLs. This vision paper proposes a conceptual framework to generate concrete syntax intelligently. Our framework considers multiple concerns of users and aims to align the concrete syntax with the context of the DSML usage. Additionally, we detail a baseline process to employ our framework in practice, leveraging large language models to expedite the generation of tailored concrete syntax. We illustrate the potential of our vision with two concrete examples and discuss the shortcomings and research challenges of current intelligent generation techniques.

Fri 27 Sep

Displayed time zone: Amsterdam, Berlin, Bern, Rome, Stockholm, Vienna change

10:45 - 12:30
MDE and AI (2)Technical Track at HS 1
Chair(s): Sébastien Mosser McMaster University
10:45
18m
Talk
Automated Derivation of UML Sequence Diagrams from User Stories: Unleashing the Power of Generative AI vs. Rule-Based ApproachFT
Technical Track
Munima Jahan , Mohammad Mahdi Hassan , Reza Golpayegani , Golshid Ranjbaran , Chanchal K. Roy University of Saskatchewan, Canada, Banani Roy University of Saskatchewan, Kevin Schneider University of Saskatchewan
11:06
18m
Talk
AI-Driven Consistency of SysML DiagramsFT
Technical Track
Ludovic Apvrille , Bastien Sultan Télécom Paris, Polytechnic Institute of Paris
11:27
18m
Talk
Toward Intelligent Generation of Tailored Graphical Concrete SyntaxFTVISION
Technical Track
Meriem Ben Chaaben Université de Montréal, Oussama Ben Sghaier DIRO, Université de Montréal, Mouna Dhaouadi University of Montreal, Nafisa Elrasheed , Ikram Darif École de technologie supérieure (ÉTS), Imen Jaoua , Bentley Oakes Polytechnique Montréal, Eugene Syriani Université de Montréal, Mohammad Hamdaqa Polytechnique Montréal
DOI Pre-print
11:48
18m
Talk
A DSL for Testing LLMs for Fairness and BiasPT
Technical Track
Sergio Morales Universitat Oberta de Catalunya, Robert Clarisó Universitat Oberta de Catalunya, Jordi Cabot Luxembourg Institute of Science and Technology
12:09
12m
Talk
Towards Runtime Monitoring for Responsible Machine Learning using Model-driven EngineeringFTVISION
Technical Track
Hira Naveed Monash University, John Grundy Monash University, Chetan Arora Monash University, Hourieh Khalajzadeh Deakin University, Australia, Omar Haggag Monash University, Australia
Link to publication DOI Pre-print