Project cooperationUpdated on 2 February 2026
Human-Centred, AI-Enabled Production Scheduling
Research Associate at Institute for Factory Automation and Production Systems (FAPS)
Erlangen, Germany
About
Our objective is to develop an AI-enabled scheduling framework that delivers adaptive, real-time, data-driven production scheduling under human and operational constraints. The approach combines:
-
Multi-agent reinforcement learning for high-dimensional, dynamic scheduling optimisation (beyond throughput, e.g., energy/waste/carbon reduction).
-
LLM/agentic AI to translate schedules into clear, actionable worker instructions (mobile/wearable), and to capture structured worker feedback in natural language.
-
Explainability to make trade-offs understandable and increase trust.
-
Plug-and-produce integration, leveraging generative AI to help configure and maintain interfaces to ERP/MES/SCADA.
We are looking for partners, especially:
-
Application partners interested in advanced scheduling and/or currently facing scheduling challenges
-
Industrial partners with a focus on production optimisation (e.g., scheduling, energy efficiency, waste reduction), preferably with experience or interest in machine learning, combinatorial optimisation, and/or LLMs/agentic AI
-
System integrators / industrial IT/OT integrators
-
Manufacturing companies willing to provide pilot lines, real constraints, and evaluation of usability/adoption.
-
Worker-centric technology providers (wearables, HMIs, digital assistance systems).
-
Social Science and Humanities Research Organizations
Similar opportunities
Expertise
AI Services for Distributed Systems
Daniel Field
Head of innovation at UST
Barcelona / Madrid, Spain
Project cooperation
Partner Offer: Industrial Engineering and Management | RCM2+ Research Center
- Partner seeks Consortium
- Cluster 4 2026 Call - INDUSTRY
- Ideation - identifying the project idea
- Cluster 4 2026 Call - INDUSTRY two-stage
Diana Delgado
Research Manager at Lusofona University
Lisboa, Portugal
Expertise
HPC Services for Distributed Systems
Daniel Field
Head of innovation at UST
Barcelona / Madrid, Spain