You can view the full text of this article for free using the link below.

Title: Exploring the impact of lean, agile, resilient, and green supply chain practices on organisational performance through mediating role of big data analytics

Authors: Nourhan Ahmed Saad; Mahmoud Ramadan Barakat

Addresses: Logistics of International Trade Department, College of International Transport and Logistics, Arab Academy for Science, Technology and Maritime Transport, Abu Qir Al Gharbeyah, Montaza 2, Alexandria, Egypt ' Logistics of International Trade Department, College of International Transport and Logistics, Arab Academy for Science, Technology and Maritime Transport, Abu Qir Al Gharbeyah, Montaza 2, Alexandria, Egypt

Abstract: This research uses resource-based view and dynamic capabilities view to investigate the impact of lean, agile, resilient, and green supply chain (LARG-SC) practices on organisational performance through big data analytics. An online-based, self-administrative questionnaire was conducted from different companies in Egypt. Quantitative analysis was assessed through covariance based structural equation modelling for 622 responses using AMOS. The findings revealed that big data analytics could significantly mediate the relationship between LARG-SC practices and organisational performance. The findings provide an in-depth empirical illustration on understanding big data analytics and how it addresses the challenges of LARG-SC practices of companies in developing countries. This will help in extending both theoretical lenses resource-based view and dynamic capabilities view, especially that further studies are needed in emerging economies. In addition, the findings of this research will fall in line with Egyptian the strategic objective 2030 to be fully digitalised.

Keywords: lean practices; agile practices; resilient practices; green practices; organisational performance; big data analytics; BDA.

DOI: 10.1504/IJPM.2025.143516

International Journal of Procurement Management, 2025 Vol.22 No.1, pp.81 - 103

Received: 10 Sep 2023
Accepted: 20 Sep 2023

Published online: 30 Dec 2024 *

Full-text access for editors Full-text access for subscribers Free access Comment on this article