A SYSTEMS APPROACH TO PROACTIVE MANAGEMENT IN UKRAINIAN INDUSTRIAL ENTERPRISES
DOI:
https://doi.org/10.30890/2709-2313.2023-21-01-004Keywords:
industrial enterprise, proactive management, commodity market, Internet of Things, digital twins, intelligent labor, cobots, convolutional neural networks, Industry 5.0.Abstract
The results of a system analysis of the problem of proactive management of an industrial enterprise under conditions of risks and uncertainties are presented. It is shown that the main objective of proactive management of an industrial enterprise is to alMetrics
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