Optimizing Smart Manufacturing Processes and Human Resource Management through Machine Learning Algorithms.
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Item Type: | Article |
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Title:
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Optimizing Smart Manufacturing Processes and
Human Resource Management through Machine
Learning Algorithms
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Abstract:
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The integration of smart manufacturing technologies presents both technological and human resource challenges for developing economies transitioning toward Industry 4.0. This study developed and implemented a comprehensive machine learning framework that optimizes manufacturing processes while effectively integrating human resource capabilities across 50 manufacturing facilities in Uzbekistan's automotive, textile, and food processing sectors. The research implemented a three-tier machine learning framework combining random forest algorithms, k-means clustering, and deep neural networks, while simultaneously developing Keywords: |
Creators:
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Priatna, Deden Komar and Limakrisna, Nandan and Abdullaev, D and Roswinna, Winna and Khalikov, A and Hussein, L
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Subjects:
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Depositing User:
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Date Deposited:
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26 Aug 2025 07:40
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Last Modified:
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26 Aug 2025 07:40
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URI: | https://repo.unwim.ac.id/id/eprint/1062 |