Benutzer: Gast  Login
Mehr Felder
Einfache Suche
Sortieren nach:
und:
Mehr ...

Schumann, Felix;Rinderle-Ma, Stefanie
Resource-Driven Process Manipulation: Modeling Concepts and Valid Allocations
Cooperative Information Systems
Springer Nature Switzerland
2023

Mehr ...

Raedler, Simon;Berardinelli, Luca;Winter, Karolin;Rahimi, Abbas;Rinderle-Ma, Stefanie
Model-Driven Engineering for Artificial Intelligence -- A Systematic Literature Review
Objective: This study aims to investigate the existing body of knowledge in the field of Model-Driven Engineering MDE in support of AI (MDE4AI) to sharpen future research further and define the current state of the art. Method: We conducted a Systemic Literature Review (SLR), collecting papers from five major databases resulting in 703 candidate studies, eventually retaining 15 primary studies. Each primary study will be evaluated and discussed with respect to the adoption of (1) MDE principles and practices and (2) the phases of AI development support aligned with the stages of the CRISP-DM methodology. Results: The study's findings show that the pillar concepts of MDE (metamodel, concrete syntax and model transformation), are leveraged to define domain-specific languages (DSL) explicitly addressing AI concerns. Different MDE technologies are used, leveraging different language workbenches. The most prominent AI-related concerns are training and modeling of the AI algorithm, while minor emphasis is given to the time-consuming preparation of the data sets. Early project phases that support interdisciplinary communication of requirements, such as the CRISP-DM \textit\Business Understanding\ phase, are rarely reflected. Conclusion: The study found that the use of MDE for AI is still in its early stages, and there is no single tool or method that is widely used. Additionally, current approaches tend to focus on specific stages of development rather than providing support for the entire development process. As a result, the study suggests several research directions to further improve the use of MDE for AI and to guide future research in this area.
2023

Mehr ...

Raedler, Simon;Mangler, Juergen;Rinderle-Ma, Stefanie
Model-Driven Engineering Method to Support the Formalization of Machine Learning using SysML
Methods: This work introduces a method supporting the collaborative definition of machine learning tasks by leveraging model-based engineering in the formalization of the systems modeling language SysML. The method supports the identification and integration of various data sources, the required definition of semantic connections between data attributes, and the definition of data processing steps within the machine learning support. Results: By consolidating the knowledge of domain and machine learning experts, a powerful tool to describe machine learning tasks by formalizing knowledge using the systems modeling language SysML is introduced. The method is evaluated based on two use cases, i.e., a smart weather system that allows to predict weather forecasts based on sensor data, and a waste prevention case for 3D printer filament that cancels the printing if the intended result cannot be achieved (image processing). Further, a user study is conducted to gather insights of potential users regarding perceived workload and usability of the elaborated method. Conclusion: Integrating machine learning-specific properties in systems engineering techniques allows non-data scientists to understand formalized knowledge and define specific aspects of a machine learning problem, document knowledge on the data, and to further support data scientists to use the formalized knowledge as input for an implementation using (semi-) automatic code generation. In this respect, this work contributes by consolidating knowledge from various domains and therefore, fosters the integration of machine learning in industry by involving several stakeholders.
2023

Mehr ...

Raedler, Simon;Rupp, Matthias;Rigger, Eugen;Rinderle-Ma, Stefanie
Code Generation for Machine Learning using Model-Driven Engineering and SysML
Data-driven engineering refers to systematic data collection and processing using machine learning to improve engineering systems. Currently, the implementation of data-driven engineering relies on fundamental data science and software engineering skills. At the same time, model-based engineering is gaining relevance for the engineering of complex systems. In previous work, a model-based engineering approach integrating the formalization of machine learning tasks using the general-purpose modeling language SysML is presented. However, formalized machine learning tasks still require the implementation in a specialized programming languages like Python. Therefore, this work aims to facilitate the implementation of data-driven engineering in practice by extending the previous work of formalizing machine learning tasks by integrating model transformation to generate executable code. The method focuses on the modifiability and maintainability of the model transformation so that extensions and changes to the code generation can be integrated without requiring modifications to the code generator. The presented method is evaluated for feasibility in a case study to predict weather forecasts. Based thereon, quality attributes of model transformations are assessed and discussed. Results demonstrate the flexibility and the simplicity of the method reducing efforts for implementation. Further, the work builds a theoretical basis for standardizing data-driven engineering implementation in practice.
2023

Mehr ...

Kampik, Timotheus;Warmuth, Christian;Rebmann, Adrian;Agam, Ron;Egger, Lukas N. P.;Gerber, Andreas;Hoffart, Johannes;Kolk, Jonas;Herzig, Philipp;Decker, Gero;van der Aa, Han;Polyvyanyy, Artem;Rinderle-Ma, Stefanie;Weber, Ingo;Weidlich, Matthias
Large Process Models: Business Process Management in the Age of Generative AI
The continued success of Large Language Models (LLMs) and other generative artificial intelligence approaches highlights the advantages that large information corpora can have over rigidly defined symbolic models, but also serves as a proof-point of the challenges that purely statistics-based approaches have in terms of safety and trustworthiness. As a framework for contextualizing the potential, as well as the limitations of LLMs and other foundation model-based technologies, we propose the concept of a Large Process Model (LPM) that combines the correlation power of LLMs with the analytical precision and reliability of knowledge-based systems and automated reasoning approaches. LPMs are envisioned to directly utilize the wealth of process management experience that experts have accumulated, as well as process performance data of organizations with diverse characteristics, e.g., regarding size, region, or industry. In this vision, the proposed LPM would allow organizations to receive context-specific (tailored) process and other business models, analytical deep-dives, and improvement recommendations. As such, they would allow to substantially decrease the time and effort required for business transformation, while also allowing for deeper, more impactful, and more actionable insights than previously possible. We argue that implementing an LPM is feasible, but also highlight limitations and research challenges that need to be solved to implement particular aspects of the LPM vision.
2023

Mehr ...

Benzin, Janik-Vasily;Rinderle-Ma, Stefanie
Petri Net Classes for Collaboration Mining: Assessment and Design Guidelines
arXiv
2023

Mehr ...

Anastasiya Damaratskaya
Identification and Visualization of Legal Definitions and their Relations Based on European Regulatory Documents
Bachelorarbeit
2023

Mehr ...

Ritter, Daniel;Forsberg, Fredrik Nordvall;Rinderle-Ma, Stefanie
Responsible Composition and Optimization of Integration Processes under Correctness Preserving Guarantees
arxiv
2023

Mehr ...

Klievtsova, Nataliia;Benzin, Janik-Vasily;Kampik, Timotheus;Mangler, Juergen;Rinderle-Ma, Stefanie
Conversational Process Modelling: State of the Art, Applications, and Implications in Practice
preprint
2023

Mehr ...

Scheibel, Beate;Rinderle-Ma, Stefanie
An End-to-End Approach for Online Decision Mining and Decision Drift Analysis in Process-Aware Information Systems: Extended Version
arXiv
2023