Digital learning, big data analytics and mechanisms for stabilizing and improving supply chain performance

Autor: Aziz Barhmi, Fahd Slamti, Soulaimane Laghzaoui, Mohamed Reda Rouijel
Jazyk: angličtina
Rok vydání: 2024
Předmět:
Zdroj: International Journal of Information Systems and Project Management, Vol 12, Iss 2 (2024)
Druh dokumentu: article
ISSN: 2182-7788
DOI: 10.12821/ijispm120202
Popis: This study attempts to shed light on the nature of the contribution of digital learning orientation (DLO), as an intangible resource, to the development of the dynamic capability of supply chain data analytics powered by artificial intelligence (SCDA-AI) as well as to the moderation of its effects on the enhancement of the operational capabilities of supply chain flexibility (SCFL), supply chain resilience (SCRE) and supply chain responsiveness (SCRES) in order to stabilize and improve supply chain performance (SCPER) in times of uncertainties and disruptions. The study was based on survey data collected from 200 foreign companies based in Morocco. Respondents were mainly senior and middle managers with experience in general management and supply chain (SC). Validity and reliability analyses and hypothesis testing were carried out using structural equation modelling (SEM) with SPSS Amos. The results revealed that DLO acts as an antecedent to SCDA-AI without moderating its effects on the three operational capabilities of SCFL, SCRE and SCRES. In addition, this study provides further empirical evidence that dynamic capabilities can produce significant results in terms of stabilizing and improving performance through the generation and/or reconfiguration of operational capabilities in situations of uncertainties and disruptions.
Databáze: Directory of Open Access Journals