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AutoML for Time Series Analysis in Production Engineering: A Research Case Study

  • AutoML
  • automated machine learning
  • time series analysis
  • production engineering
  • industrial machine learning
  • automated featurization
  • predictive modeling
  • usable artificial intelligence

MLJAR tools were used in the following publication.

AutoML Applied to Time Series Analysis Tasks in Production Engineering

Conrad, Felix, Mälzer, Mauritz, Lange, Felix, Wiemer, Hajo, Ihlenfeldt, Steffen

Peer-reviewed research paper showing how AutoML can be applied to time series analysis tasks in production engineering with automated featurization and reduced manual effort.

Procedia Computer Science • March 21, 2024

DOI: 10.1016/j.procs.2024.01.085

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