A systematic Overview of Fundamentals and Methods of Business Intelligence

Ketan Gupta, Nasmin Jiwani

Abstract


Access to relevant information and expertise is essential for organizations in the demanding business climate of today. Business intelligence (BI) is a general term for the tools, methods, and products that assist managers in comprehending the state of their company's operations. Additionally, BI technologies can help firms meet their informational knowledge demands. In this article, new investigations and papers from academic journals in this field are systematically reviewed to categorize and prioritize the ideas and techniques of business intelligence. This is done in response to the rising trend of BI research in BI concepts and applications. As a result, research on BI was categorized into three categories: managerial, technical, and system-enabled methods. Each category's specification and future research directions were presented.


Keywords


business intelligence, managers, academic journals, research

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References


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