

Leveraging Big Data and Business Intelligence: A Case Study of McDonald's Competitive Advantage
Abstract
In the contemporary business landscape, the integration of business intelligence (BI) and big data analytics has become crucial for organizations seeking a competitive edge. This paper explores the fundamental characteristics of big data—volume, variety, and velocity—and their interplay with business intelligence, which facilitates data analysis and visualization for informed decision-making. Focusing on McDonald's as a case study, this research examines how the company has successfully incorporated BI and big data analytics into its operations, enhancing its ability to process vast amounts of information from diverse sources swiftly. By analyzing McDonald's approach, this paper underscores the significance of leveraging data-driven insights to improve business performance and strategic outcomes.
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