Your browser doesn't support javascript. This means that the content or functionality of our website will be limited or unavailable. If you need more information about Vinnova, please contact us.

Trustworthy Generative AI for Advanced Industrial DigitaliZation (Trust_Gen_Z)

Reference number
Coordinator Mälardalens Universitet - Akademin för innovation design & teknik IDT
Funding from Vinnova SEK 6 040 782
Project duration September 2024 - September 2027
Status Ongoing
Venture Advanced digitalization - Enabling technologies
Call AI for advanced digitalization 2024

Purpose and goal

The Trust_Gen_Z project applies generative AI (gAI) to enhance prescriptive analytics in industrial digitalisation. By developing a multimodal framework, we aim to optimise decision-making by providing actionable insights and clear explanations for system outcomes. This will improve the inspection, monitoring, optimisation, and maintenance of industrial machinery and equipment.

Expected effects and result

- Reports on Data management plan (M30), Project dissemination plan (M36) - A novel XAI methods and algorithms for gAI (M24) (1 Journal and 1 Conference papers) - Interactive Intelligence tools (M20) (1 Journal and 1 Workshop papers) - A new gAI-based framework for prescriptive analytics (M30) (1 Journal and 1 Conference papers) - Reports on validation plan (M24) and demonstrations (M36) (2 Conference papers)

Planned approach and implementation

WP1: Project Management and Dissemination, Lead MDU Start Month (M) 1 End Month (M) 36 WP2: Inference to Best Explanation for gAI, Lead Ericsson Start Month (M) 1 End Month (M) WP3: Generative AI for Interaction Intelligence, Lead MDU Start Month (M) 4 End Month (M) 24 WP4: Prescriptive Analytics for Sustainable Digital Transformation, Lead VCE Start Month (M) 12 End Month (M) 30 WP5: Test, Validation and Demonstration, Lead MainlyAI Start Month (M) 18 End Month (M) 36

External links

The project description has been provided by the project members themselves and the text has not been looked at by our editors.

Last updated 24 September 2024

Reference number 2024-01402