Type of course:
Digital learning, Path
Language:
EN
Duration:
2 hours, 0 minutes
Workload:
4 hours
Proficiency:
Intermediate
Target:
Professionals, Students, Manager
SUMMARY
The learning path provides learners with the knowledge and skills needed to respond to changing market demand in digital manufacturing. Through these lessons, participants will explore the foundations of market demand awareness, understand the role of interpreting different market signals and applying Artificial Intelligence models to predict the market demand shift. They can then discover how data can guide decision making and explore case studies across various industries to demonstrate real-world use cases. At the end of the course, learners will be able to understand how complex data can be transformed into actionable insights and their critical role in enhancing resilience, innovation and competitiveness in dynamic production environments.

About The Author
This learning path was developed within the EU-funded R3GROUP project, as part of Task 5.4: Social Impact Management, to raise the awareness about resilience strategies and technologies for reconfiguration in different manufacturing sectors. The authors bring combined expertise in engineering, innovation, and industrial transformation, ensuring a balanced approach between theoretical foundations and practical application.
The R3GROUP project has received funding from the European Union’s Horizon Europe programme under grant agreement No. 101091869. Views and opinions expressed are however those of the author(s) only and do not necessarily reflect those of the European Union. Neither the European Union nor the granting authority can be held responsible for them.
Learning outcomes
- By the end of this learning path, learners will be able to define and differentiate between historical, current, and future market demand, and describe the main key factors influencing demand changes.
- By the end of this learning path, learners will be able to recognize the potential impact of regulatory, technological, and R&D signals on production planning and market competitiveness through case-based discussions.
- By the end of this learning path, learners will be able to classify and compare the various forecasting approaches (traditional vs. AI/analytics-driven) and describe how data-driven insights may direct proactive decision-making for market demand awareness.
Course Content
Topics
Uncategorized
