Optimizing Supply Chain Management with ChatGPT: An Analytical and Empirical Multi-Methodological Study

Authors

  • Akash Kadam Department of Mechanical and Industrial Engineering, Texas A&M University-Kingsville, , Kingsville, TX, 78363, USA https://orcid.org/0009-0003-3870-9525
  • Harshad Pitkar Cummins Inc, Columbus, IN 47201, USA

DOI:

https://doi.org/10.32996/jcsts.2025.7.1.25

Keywords:

Demand forecasting, Inventory management, ChatGPT, Natural Language Processing, Supply Chain Management, Automation, Edge Computing

Abstract

 This work explores how a leading language model, ChatGPT, can improve every aspect of supply chain management (SCM) by using a multi-methodological approach: quantitative analysis, qualitative case studies, and simulation models, to set goals that delve into the efficiency of ChatGPT in enhancing demand forecasting accuracy, improving decision-making processes, and highlighting the best practices for its deployment across different SCM tasks. Empirical results indicate that ChatGPT significantly increases the accuracy of the forecast, and the efficiency of decision-making compared to traditional methods. Qualitative insights reflect positive feedback from supply chain professionals, and best practices identified in areas such as predictive maintenance, and automation of customer service. The key findings have a great number of implications for SCM practitioners, theorists, and policymakers, indicating the potential of the model for transforming supply chain operations while pointing at avenues for future research on AI integration and its impact assessment.

Author Biography

  • Akash Kadam, Department of Mechanical and Industrial Engineering, Texas A&M University-Kingsville, , Kingsville, TX, 78363, USA

    Akash Kadam is a Mechanical Design Engineer with end client Caterpillar in the USA,
    specializing in developing advanced supply chain and smart manufacturing solutions within
    the frameworks of Industry 4.0 and 5.0. Leveraging AI, Machine Learning, and Big Data,
    Akash has over a decade of experience driving innovation in digital manufacturing. In
    recognition of his contributions, he received the prestigious Global Recognition Award in
    2024 for creating a Big Data-powered, advanced inventory management solution that has
    set new standards for operational efficiency.

Downloads

Published

2025-03-15

Issue

Section

Research Article

How to Cite

Kadam, A., & Pitkar, H. (2025). Optimizing Supply Chain Management with ChatGPT: An Analytical and Empirical Multi-Methodological Study. Journal of Computer Science and Technology Studies, 7(1), 337-350. https://doi.org/10.32996/jcsts.2025.7.1.25