Data Processing is the collection, transformation, and analysis of information to support decisions, control processes, and improve efficiency. In manufacturing, it forms the backbone of Industry 4.0, connecting machines, sensors, and software systems such as MES, BDE, and OEE.
Modern factories rely on real-time data processing to identify inefficiencies, prevent downtime, and optimize resource use.
Data processing typically follows four key steps:
Data processing enables connected production environments to operate efficiently and predictively.
It supports:
This integration transforms raw machine data into actionable insights that drive continuous improvement.
Accurate decision-making based on live data
Faster response to deviations
Reliable, standardized data quality
Improved productivity through targeted optimization
Foundation for AI, simulation, and digital twins
A manufacturing company used MES-based data processing to analyze unplanned stops. By correlating BDE machine logs with OEE losses, it identified setup issues as the main cause. Adjustments in scheduling reduced downtime by 22 % and raised OEE by 12 points.
Data Processing turns raw production data into business value. By combining MES, BDE, and OEE, manufacturers achieve transparency, efficiency, and continuous improvement — the pillars of a truly smart factory.