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Streamlining the development of data-driven industrial applications by automated machine learning

Dominik Kißkalt, Andreas Mayr, Benjamin Lutz, Annelie Rögele, Jörg Franke

2020Procedia CIRP17 citationsDOIOpen Access PDF

Abstract

Machine learning has often proven superior to traditional white-box modeling in industrial application scenarios. Yet the determinism in finding a solution close to the theoretical optimum is low due to human factors in the development process. Automated machine learning (AutoML), on the other hand, allows a complete automation of the machine learning pipeline from feature extraction and preprocessing to model selection and hyperparameter optimization. Using a popular open dataset, this paper exemplifies how AutoML can streamline the development of data-driven industrial applications. As a benchmark, results from existing approaches on the same dataset are used.

Topics & Concepts

Machine learningArtificial intelligenceComputer sciencePipeline (software)AutomationProcess (computing)Data pre-processingPreprocessorBenchmark (surveying)HyperparameterEngineeringMechanical engineeringProgramming languageGeographyGeodesyOperating systemIndustrial Vision Systems and Defect DetectionMachine Learning and Data ClassificationFault Detection and Control Systems
Streamlining the development of data-driven industrial applications by automated machine learning | Litcius