Advanced AI Architectures for Integrated and Enhanced Manufacturing Operations (AIMOps)
Research Project, 2025 – 2028

Purpose and goal
AIMOps project aims to design, develop, and deploy advanced AI architectures to enable predictive and prescriptive decision making across manufacturing operations by promoting synergy between them, leading to improved system-level performance. Goals include creating scalable AI for multimodal data from production, maintenance, and quality domains, building and validating robust prototypes, deploying them by applying MLOps and a long-term lifecycle perspective.

Expected effects and result
The expected results include the architectural design of AI models, prototype development and deployment, and knowledge dissemination materials. These results will enable industrial partners to make proactive shop-floor decisions, leading to higher productivity and quality, reduced costs and downtime, and enhanced operational performance. This will also strengthen Sweden’s competitiveness in industrial AI and foster innovation.

Planned approach and implementation
The project will integrate data from all shop-floor operations and apply advanced AI models to capture complex links between process parameters, machine health and product quality. Both simple and advanced models will be tested on industrial use cases to balance complexity, cost, and predictive accuracy. Successful models will be deployed using MLOps frameworks, with dashboards and user interfaces enabling actionable insights.

Participants

Ebru Turanoglu Bekar (contact)

Chalmers, Industrial and Materials Science, Production Systems

Siyuan Chen

Chalmers, Industrial and Materials Science, Production Systems

Elisa Margarita Gonzalez Santacruz

Chalmers, Industrial and Materials Science, Production Systems

Mohan Rajashekarappa

Chalmers, Industrial and Materials Science, Production Systems

Anders Skoogh

Chalmers, Industrial and Materials Science, Production Systems

Collaborations

Aurobay

Skövde, Sweden

Capgemini

Bromma, Sweden

Husqvarna AB

Huskvarna, Sweden

Preem

Stockholm, Sweden

SKF Group

Goteborg, Sweden

University of Skövde

Skövde, Sweden

Volvo Group

Gothenburg, Sweden

Funding

VINNOVA

Project ID: 2025-01110
Funding Chalmers participation during 2025–2028

Related Areas of Advance and Infrastructure

Sustainable development

Driving Forces

Production

Areas of Advance

More information

Latest update

11/14/2025