Artikel in Tagungsband INPROC-2020-56

Bibliograph.
Daten
Weber, Christian; Reimann, Peter: MMP - A Platform to Manage Machine Learning Models in Industry 4.0 Environments.
In: Proceedings of the IEEE 24th International Enterprise Distributed Object Computing Workshop (EDOCW).
Universität Stuttgart, Fakultät Informatik, Elektrotechnik und Informationstechnik.
englisch.
Eindhoven, The Netherlands: IEEE, Juli 2020.
Artikel in Tagungsband (Demonstration).
CR-Klassif.H.3.4 (Information Storage and Retrieval Systems and Software)
KeywordsModel Management; Machine Learning; Collaborative Data Science
Kurzfassung

In manufacturing environments, machine learning models are being built for several use cases, such as predictive maintenance and product quality control. In this context, the various manufacturing processes, machines, and product variants make it necessary to create and use lots of different machine learning models. This calls for a software system that is able to manage all these diverse machine learning models and associated metadata. However, current model management systems do not associate models with business and domain context to provide non-expert users with tailored functions for model search and discovery. Moreover, none of the existing systems provides a comprehensive overview of all models within an organization. In our demonstration, we present the MMP, our model management platform that addresses these issues. The MMP provides a model metadata extractor, a model registry, and a context manager to store model metadata in a central metadata store. On top of this, the MMP provides frontend components that offer the above-mentioned functionalities. In our demonstration, we show two scenarios for model management in Industry 4.0 environments that illustrate the novel functionalities of the MMP. We demonstrate to the audience how the platform and its metadata, linking models to their business and domain context, help non-expert users to search and discover models. Furthermore, we show how to use MMP's powerful visualizations for model reporting, such as a dashboard and a model landscape view.

Abteilung(en)Universität Stuttgart, Institut für Parallele und Verteilte Systeme, Anwendersoftware
Projekt(e)GSaME-NFG
Eingabedatum13. August 2021
   Publ. Abteilung   Publ. Institut   Publ. Informatik