The use of artificial intelligence in the resource management process to increase the efficiency of the enterprise
Aleksey G. Tashkinov
Perm National Research Polytechnic University, 29 Komsomolsky Prospekt, Perm Krai, Perm, 614990, Russia
DOI: https://doi.org/10.59429/scr.v2i1.8992
Keywords: artificial intelligence; digital platform; industry 4.0
Abstract
This article presents an interdisciplinary approach to solving problems related to the introduction of digital technologies in industry, with a special focus on artificial intelligence. The author develops a methodological framework based on the principles of creating artificial intelligence and machine learning methods, which makes it possible to overcome the shortcomings identified during the research. Artificial intelligence is a system of intelligent machines with the necessary computing resources and algorithms that ensure their ability to learn. To improve the efficiency of production processes, the author proposes a project that combines the principles of Industry 4.0 with advanced digital technologies, such as artificial intelligence, at the enterprise level. The result of this work was the successful implementation of a carefully developed digital platform model that integrates artificial intelligence within Industry 4.0.
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