IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

Inventory Classification and Management System Using Machine Learning and Analytical Dashboard: A Case Study of a Manufacturing Industry

Inventory Classification and Management System Using Machine Learning and Analytical Dashboard: A Case Study of a Manufacturing Industry
View Sample PDF
Author(s): Renouthani A. P. Jayendran (Universiti Sains Malaysia, Malaysia), Pantea Keikhosrokiani (University of Oulu, Finland)and Sian Ling Chui (Ideal Vision Integration Sdn. Bhd., Malaysia)
Copyright: 2024
Pages: 20
Source title: Data-Driven Business Intelligence Systems for Socio-Technical Organizations
Source Author(s)/Editor(s): Pantea Keikhosrokiani (University of Oulu, Finland)
DOI: 10.4018/979-8-3693-1210-0.ch012

Purchase


Abstract

This chapter explores the integration of inventory management and machine learning, offering a comprehensive guide to harnessing analytical dashboards for improved decision-making. At the core of modern inventory management lies the challenge of balancing stock levels to meet demand without incurring excess or shortfall. Using classification algorithms, this chapter explores how machine learning techniques can revolutionize inventory control, making predictions more accurate and operations more efficient. It provides a detailed walkthrough of implementing these machine learning models, emphasizing their practical benefits in forecasting and classification tasks within inventory management. Furthermore, it demonstrates how Power BI can be leveraged to visualize inventory data, enabling stakeholders to gain insights into stock trends, performance metrics, and the overall health of the supply chain. By integrating machine learning outputs into Power BI dashboards, businesses can achieve a holistic view of their inventory dynamics, facilitating informed decision-making processes.

Related Content

Marcos Komodromos, Sofia Anastasiadou, Lamprini Seremeti. © 2026. 36 pages.
Lamprini Seremeti, Lazaros Anastasiadis, Marcos Komodromos. © 2026. 12 pages.
Eleftheria Panagiotidou, Elena Kagioglou, Athanasios Mandilas, Giannoula Florou. © 2026. 38 pages.
José G. Vargas-Hernandez, Csongor Czipf, Absalón J. Salmerón-Zapata. © 2026. 28 pages.
José G. Vargas-Hernandez, Csongor Czipf, Absalòn J. Salmeròn-Zapata. © 2026. 26 pages.
Jose De Jesus Reyes-Sánchez. © 2026. 32 pages.
K. Balaji. © 2026. 26 pages.
Body Bottom