Machine Learning im Logistikmanagement - Entwicklung eines Gestaltungsansatzes zum Einsatz von ML-Anwendungen in logistischen Entscheidungsprozessen / / Manuel Weinke.

As a subfield of artificial intelligence, machine learning (ML) represents a key technology of the 21st century. Using the mathematical-statistical methods, technical systems can be developed that independently discover empirical patterns on the basis of data and thus adapt their behavior to solve b...

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Place / Publishing House:Berlin, Germany : : Universitätsverlag der Technischen Universität Berlin,, 2023.
Year of Publication:2023
Language:German
Physical Description:1 online resource (xiv, 330 pages)
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spelling Weinke, Manuel, author.
Machine Learning im Logistikmanagement - Entwicklung eines Gestaltungsansatzes zum Einsatz von ML-Anwendungen in logistischen Entscheidungsprozessen / Manuel Weinke.
Berlin, Germany : Universitätsverlag der Technischen Universität Berlin, 2023.
1 online resource (xiv, 330 pages)
text txt rdacontent
computer c rdamedia
online resource cr rdacarrier
Description based on publisher supplied metadata and other sources.
As a subfield of artificial intelligence, machine learning (ML) represents a key technology of the 21st century. Using the mathematical-statistical methods, technical systems can be developed that independently discover empirical patterns on the basis of data and thus adapt their behavior to solve business problems in the sense of a system-based learning. According to the complexity of planning, controlling and monitoring tasks in manufacturing value chains, ML applications are considered to be of high relevance for the support and autonomous operation of logistics decision-making processes. For this field of logistics management, the dissertation investigates central questions concerning the use of ML. By studying the current state of research and by intensively involving the practice, possible use cases, corresponding effects with potentials and limitations, as well as necessary requirements are identified. The result of the dissertation represents a design approach that shows suitable measures for the fulfillment of these domain- and technology-specific requirements which are structured according to several areas of action. These range from infrastructural activities for the integration of data to organizational and procedural measures for conducting ML projects up to the management of changed roles for employees. Due to its interdisciplinary and practical orientation, the developed design approach is a useful tool for companies to cope with the challenges of implementing ML in logistics management. Together with other deliverables of the dissertation, which also include the technical characteristics and future developments of ML, managers can acquire the expertise to successfully design the adoption of the technology and, at the same time, implement important framework conditions for the digital transformation of their enterprises.
Artificial intelligence Social aspects.
Artificial intelligence Methodology.
3-7983-3298-3
language German
format eBook
author Weinke, Manuel,
spellingShingle Weinke, Manuel,
Machine Learning im Logistikmanagement - Entwicklung eines Gestaltungsansatzes zum Einsatz von ML-Anwendungen in logistischen Entscheidungsprozessen /
author_facet Weinke, Manuel,
author_variant m w mw
author_role VerfasserIn
author_sort Weinke, Manuel,
title Machine Learning im Logistikmanagement - Entwicklung eines Gestaltungsansatzes zum Einsatz von ML-Anwendungen in logistischen Entscheidungsprozessen /
title_full Machine Learning im Logistikmanagement - Entwicklung eines Gestaltungsansatzes zum Einsatz von ML-Anwendungen in logistischen Entscheidungsprozessen / Manuel Weinke.
title_fullStr Machine Learning im Logistikmanagement - Entwicklung eines Gestaltungsansatzes zum Einsatz von ML-Anwendungen in logistischen Entscheidungsprozessen / Manuel Weinke.
title_full_unstemmed Machine Learning im Logistikmanagement - Entwicklung eines Gestaltungsansatzes zum Einsatz von ML-Anwendungen in logistischen Entscheidungsprozessen / Manuel Weinke.
title_auth Machine Learning im Logistikmanagement - Entwicklung eines Gestaltungsansatzes zum Einsatz von ML-Anwendungen in logistischen Entscheidungsprozessen /
title_new Machine Learning im Logistikmanagement - Entwicklung eines Gestaltungsansatzes zum Einsatz von ML-Anwendungen in logistischen Entscheidungsprozessen /
title_sort machine learning im logistikmanagement - entwicklung eines gestaltungsansatzes zum einsatz von ml-anwendungen in logistischen entscheidungsprozessen /
publisher Universitätsverlag der Technischen Universität Berlin,
publishDate 2023
physical 1 online resource (xiv, 330 pages)
isbn 3-7983-3298-3
callnumber-first Q - Science
callnumber-subject Q - General Science
callnumber-label Q335
callnumber-sort Q 3335 W456 42023
illustrated Not Illustrated
dewey-hundreds 000 - Computer science, information & general works
dewey-tens 000 - Computer science, knowledge & systems
dewey-ones 006 - Special computer methods
dewey-full 006.3
dewey-sort 16.3
dewey-raw 006.3
dewey-search 006.3
work_keys_str_mv AT weinkemanuel machinelearningimlogistikmanagemententwicklungeinesgestaltungsansatzeszumeinsatzvonmlanwendungeninlogistischenentscheidungsprozessen
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is_hierarchy_title Machine Learning im Logistikmanagement - Entwicklung eines Gestaltungsansatzes zum Einsatz von ML-Anwendungen in logistischen Entscheidungsprozessen /
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