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Data Integration for Predictive Manufacturing Optimization: Machine Learning Case Study

  • machine learning
  • data integration
  • predictive manufacturing
  • manufacturing optimization
  • industrial machine learning
  • AutoML
  • data-driven manufacturing
  • smart manufacturing
  • predictive modeling

MLJAR tools were used in the following publication.

Effects of cross-factory horizontal and cross-stage vertical data integration on predictive readiness for data-driven manufacturing optimization

Opatz, Tim, Conrad, Felix, Wiemer, Hajo, Ihlenfeldt, Steffen

Peer-reviewed research on machine learning and data integration in manufacturing, showing how horizontal and vertical data integration improve predictive modeling for production optimization.

International Journal of Advanced Manufacturing Technology • March 7, 2026

DOI: 10.1007/s00170-026-17764-9

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