ENGINEERING AND TECHNOLOGY
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Ключевые слова

Smart Manufacturing, Machine Learning, Predictive Maintenance, Intelligent Automation, Real-Time Data Analytics.

Аннотация

The convergence of artificial intelligence (AI) and smart manufacturing is revolutionizing industrial operations, driving the transition toward Industry 4.0. This paper investigates the multifaceted role of AI technologies—including machine learning, computer vision, and intelligent robotics—in optimizing manufacturing processes, enhancing operational efficiency, and enabling predictive maintenance. By leveraging real-time data analytics and automated decision-making systems, smart manufacturing environments can achieve unprecedented levels of productivity, customization, and cost reduction. The study also explores the integration of digital twins and cyber-physical systems (CPS), emphasizing their synergistic interaction with AI algorithms to create adaptive, self-correcting production systems. A critical evaluation of case studies from automotive, semiconductor, and pharmaceutical sectors illustrates the practical implementation and ROI of AI-driven systems. Moreover, the research discusses key challenges such as data privacy, system interoperability, and the need for workforce reskilling. The paper concludes by identifying future directions, such as edge AI and explainable AI, that promise to further deepen AI’s role in intelligent manufacturing. This work underscores that the integration of AI not only enhances technical capabilities but also redefines organizational strategies and human roles within the industrial ecosystem.

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Библиографические ссылки

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