INVENTRA: A WEB-BASED INVENTORY MANAGEMENT SYSTEM USING FRONTEND TECHNOLOGIES
Inventory management is a critical business function ensuring that the right products are available at the right time. Traditional manual methods are labour-intensive, error-prone, and inefficient, particularly in medium to large-scale environments. This paper presents Inventra—a modern, web-based inventory management system developed entirely using HTML5, CSS3, and JavaScript (ES6+). The system provides a responsive, dashboard-driven interface enabling businesses to manage products, track stock movements, monitor low-stock alerts, generate analytical reports, and manage user roles from any device through a standard web browser, without server-side installation. Six core modules are implemented: Product Management, Stock In/Out Transactions, Alert Management, Report Generation and Analytics, User and Role Management, and an interactive Dashboard Overview. Chart.js is leveraged for dynamic data visualisation, Material Symbols for iconography, and a CSS variable system enforces a cohesive design language throughout. The system demonstrates a practical, accessible, and scalable approach to modernising inventory operations through pure frontend technologies.
V, R. & D, S. D. (2026). Inventra: A Web-Based Inventory Management System using Frontend Technologies. International Journal of Science, Strategic Management and Technology, 02(05). https://doi.org/10.55041/ijsmt.v2i4.646
V, Rethika, and Sri D. "Inventra: A Web-Based Inventory Management System using Frontend Technologies." International Journal of Science, Strategic Management and Technology, vol. 02, no. 05, 2026, pp. . doi:https://doi.org/10.55041/ijsmt.v2i4.646.
V, Rethika, and Sri D. "Inventra: A Web-Based Inventory Management System using Frontend Technologies." International Journal of Science, Strategic Management and Technology 02, no. 05 (2026). https://doi.org/https://doi.org/10.55041/ijsmt.v2i4.646.
[2] A. Kumari, P. Ashrani, M. Basha, and B. S. A. Kumar, "An approach for identifying and tracking inventory items using computer vision and sensor technologies," in Proc. IEEE ICMLA, 2023.
[3] M. Ravi, K. M. Parvesh Ahmed, and P. Sengottaiyan, "IoT based inventory status monitoring and alert system," in Proc. IEEE ICIRD, 2023.
[4] Y. Liang, L. Chen, and B. Xu, "Design of intelligent management system for inventory control," in Proc. Int. Conf. Smart Systems and Energy Management, 2022.
[5] X. Zhang, Z. Wang, H. Yu, M. Liu, and B. Xing, "Research on visual inspection technology in automatic assembly," IEEE Access, vol. 10, pp. 12340–12351, 2022.
[6] K. Thakur, A. Adhya, and C. Bajpai, "Inventory management using image processing and data analytics," in Proc. IEEE ICCMC, 2021, pp. 516–519.
[7] H. S. Tasin, M. S. Sarkar, and M. A. Rahman, "Design of automated detection system for out-of-stock items," in Proc. IEEE ICCCNT, 2021.
[8] L. Qing, K. Yang, W. Tan, and J. Li, "Automated detection of inventory using deep learning," IEEE Transactions on Industrial Electronics, vol. 68, no. 5, pp. 4321–4330, 2020.
[9] U. Andrijasevic, J. Kocic, and V. Nesic, "Inventory status detection using recurrent neural networks," in Proc. IEEE ICET, 2020.
[10] V. Vishnani, A. Adhya, and C. Bajpai, "Inventory detection using image processing," in Proc. IEEE ICARCV, 2020.