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  4. Implementing machine learning: Chances and challenges
 
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2022
Journal Article
Title

Implementing machine learning: Chances and challenges

Abstract
Finding and implementing a suitable machine learning (ML) solution to a task at hand has several facets. The technical side of ML has widely been discussed in detail, see, e. g., (Heizmann, M., A. Braun, M. Hüttel, C. Klüver, E. Marquardt, M. Overdick and M. Ulrich. 2020. Artificial Intelligence with Neural Networks in Optical Measurement and Inspection Systems. at - Automatisierungstechnik 68(6): 477-487). This contribution focusses on the industrial implementation issues of ML projects, particularly for machine vision (MV) tasks. Especially in small and medium-sized enterprises (SMEs), resources cannot be activated at will in order to use a new technology like ML. We take this into account by, on the one hand, helping to realistically evaluate the opportunities and challenges involved in implementing ML projects for a given task. On the other hand, we consider not only technical aspects, but also organizational, social and customer-related ones. It is discussed which know-how a company itself has to bring into an ML project and which tasks can also be performed by service providers. Here, it becomes clear that ML techniques can be used at different levels of detail. The question of "make or buy"is therefore also an entrepreneurial one when introducing ML into one's own products and processes, and must be answered with a view to one's own possibilities and structures.
Author(s)
Heizmann, M.
Karlsruher Institut für Technologie
Braun, A.
Hochschule Düsseldorf, University of Applied Sciences
Glitzner, M.
MVTec Software GmbH
Günther, Matthias  
Fraunhofer-Institut für Digitale Medizin MEVIS  
Hasna, G.
ANSYS, Inc.
Klüver, C.
Universität Duisburg-Essen
Krooß, J.
Helmut Schmidt University - University of the Federal Armed Forces Hamburg
Marquardt, E.
Verein Deutscher Ingenieure
Overdick, M.
SICK AG
Ulrich, M.
Karlsruher Institut für Technologie
Journal
Automatisierungstechnik : AT  
DOI
10.1515/auto-2021-0149
Language
English
Fraunhofer-Institut für Digitale Medizin MEVIS  
Keyword(s)
  • Artificial Intelligence

  • machine vision

  • neural networks

  • optical measurement and inspection systems

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