Intelligent Data Analytics Methods in Adaptive Inventory Planning

Authors

Kitaeva Iuliia

Master’s Degree, Financial University under the Government of the Russian Federation (Russia)

Article Information

DOI: 10.51244/IJRSI.2025.1210000115

Subject Category: Artificial Intelligence

Volume/Issue: 12/10 | Page No: 1307-1313

Publication Timeline

Submitted: 2025-10-07

Accepted: 2025-10-15

Published: 2025-11-06

Abstract

This article examines intelligent data analytics methods applied in adaptive inventory planning under dynamic market conditions. The possibilities of integrating demand forecasting with replenishment optimization models aimed at improving the efficiency of supply chain management are analyzed. The role of machine learning methods – including stochastic modeling, evolutionary algorithms, and reinforcement learning – in shaping adaptive procurement and resource allocation strategies is examined. Particular attention is paid to minimizing total costs while maintaining the required service level and increasing the resilience of logistics systems under uncertainty.

Keywords

adaptive inventory planning; demand forecasting; machine learning

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References

1. Drogunova, Y. (2025). The impact of software quality assurance practices on the competitiveness of the technology sector. International Journal of Advanced Research in Science, Communication and Technology, 5(1), 735–740. [Google Scholar] [Crossref]

2. Verma, P. (2024). Transforming supply chains through AI: Demand forecasting, inventory management, and dynamic optimization. Integrated Journal of Science and Technology, 1(3), 1–14. [Google Scholar] [Crossref]

3. Roilian, M. (2025). Architectural approaches to building scalable IT systems for supply chain management. Cold Science, 17, 28–38. [Google Scholar] [Crossref]

4. Nookala, G. (2024). Adaptive data governance frameworks for data-driven digital transformations. Journal of Computational Innovation, 4(1), 1–20. [Google Scholar] [Crossref]

5. Rolf, B., Jackson, I., Müller, M., Lang, S., Reggelin, T., & Ivanov, D. (2023). A review on reinforcement learning algorithms and applications in supply chain management. International Journal of Production Research, 61(20), 7151–7179. https://doi.org/10.1080/00207543.2022.2140221 [Google Scholar] [Crossref]

6. Roy, H. N., Almehdawe, E., & Kabir, G. (2024). A two-stage stochastic optimization framework for retail supply chain modeling with contemporaneous resilient strategies. Production Engineering, 18(6), 903–924. https://doi.org/10.1007/s11740-024-01279-x [Google Scholar] [Crossref]

7. Yang, Y., Wang, M., Wang, J., Li, P., & Zhou, M. (2025). Multi-agent deep reinforcement learning for integrated demand forecasting and inventory optimization in sensor-enabled retail supply chains. Sensors, 25(8), 2428. [Google Scholar] [Crossref]

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