Artificial Intelligence and Machine Learning Applied to CNC Machining

Perspectives for Industry 4.0

  • Marcos Roberto Maciel Fatec Mauá
  • Renato Marques de Barros FATEC Mauá
Keywords: Machine Learning, Industry 4.0, Artificial Intelligence, Intelligence Manufacturing, CNC Machining

Abstract

CNC (Computer Numerical Control) machining is a cornerstone of modern manufacturing, and its performance has been enhanced using Artificial Intelligence (AI) and Machine Learning (ML). The literature highlights applications such as toolpath optimization, predictive maintenance, and process planning, which improve efficiency, surface quality, cost reduction, and production time. Despite these advances, challenges remain, including high implementation costs, the need for reliable data, model complexity, lack of standardization, and organizational resistance. Even so, AI is a promising path for smart manufacturing, requiring continued technological investment and workforce training.

Author Biographies

Marcos Roberto Maciel, Fatec Mauá

Discente do Curso Superior de Tecnologia em Fabricação Mecânica 

Renato Marques de Barros, FATEC Mauá

Professor de Ensino Superior

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Published
2026-02-18