Supply chain management (SCM) involves coordinating various functions across a multi-echelon system to manage the flow of goods, services, and processes that transform raw materials into finished products. This article explores the evolution of SCM toward analytics-driven approaches, framed through the three dimensions of the XAIOR framework: Performance Analytics (PA), Attributable Analytics (AA), and Responsible Analytics (RA). This framework offers a pathway for researchers to advance SCM methodologies, addressing challenges and opportunities in the field.
Researchers could explore adaptive Bayesian models tailored to dynamic supply chain environments, incorporating real-time data to further enhance predictive accuracy. Extending Bayesian applications to perishable goods or https://geamguns.com/ volatile markets could also provide valuable insights.
By exploring these dimensions, researchers can shape the future of SCM to be more efficient, transparent, and socially responsible, ensuring its relevance in an increasingly complex global landscape.