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Benefits, challenges, and limitations of inventory control using machine learning algorithms: literature review

Author

Listed:
  • Juan Camilo Gutierrez

    (Universidad de Investigación y Desarrollo UDI)

  • Sonia Isabel Polo Triana

    (Universidad de Investigación y Desarrollo UDI)

  • Juan Sebastian León Becerra

    (Universidad de Investigación y Desarrollo UDI)

Abstract

This article presents a comprehensive review of the literature on the benefits, challenges, and limitations of using machine learning (ML) algorithms in inventory control, focusing on how these algorithms can transform inventory management and improve operational efficiency in supply chains. The originality of the study lies in its integrative approach, combining a detailed review with a critical analysis of current and future applications of ML in inventory control. The main aspects covered in the review include the types of ML algorithms most utilised in inventory control, key benefits such as replenishment optimisation and improved prediction accuracy, and the technical, ethical, and practical limitations in their implementation. The review also addresses challenges in managing high-dimensional data and adapting these algorithms to different operational contexts. The research method adopts a systematic approach to identify and analyse relevant sources, with a thorough bibliographic search resulting in a final corpus of 81 articles. The principal contribution of this research is a compendium of strategies for the implementation of ML in inventory control that leverages potential benefits while mitigating the technical and practical challenges that may arise, contributing to both theory and practice and providing valuable insights for academics and professionals in the industry, underscoring the potential and challenges of using ML in modern inventory control.

Suggested Citation

  • Juan Camilo Gutierrez & Sonia Isabel Polo Triana & Juan Sebastian León Becerra, 2025. "Benefits, challenges, and limitations of inventory control using machine learning algorithms: literature review," OPSEARCH, Springer;Operational Research Society of India, vol. 62(3), pages 1140-1172, September.
  • Handle: RePEc:spr:opsear:v:62:y:2025:i:3:d:10.1007_s12597-024-00839-0
    DOI: 10.1007/s12597-024-00839-0
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    References listed on IDEAS

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    1. Erfan Babaee Tirkolaee & Saeid Sadeghi & Farzaneh Mansoori Mooseloo & Hadi Rezaei Vandchali & Samira Aeini, 2021. "Application of Machine Learning in Supply Chain Management: A Comprehensive Overview of the Main Areas," Mathematical Problems in Engineering, Hindawi, vol. 2021, pages 1-14, June.
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