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Developing a Smart Business Intelligence System by Leveraging the Artificial Intelligence Tools, Techniques and Algorithms

Ahmed Abbas Naqvi

1-3

Vol 17, Jan-Jun, 2023

Date of Submission: 2022-11-28 Date of Acceptance: 2023-01-27 Date of Publication: 2023-02-15

Abstract

When the BI analytics market leaders started massively presenting their solutions based on the interaction of artificial intelligence and Business intelligence, which made advanced real-time data analytics possible, the years 2020 to 2021 became significant in the development of BI systems. Most BI solution developers prioritize expanding the capabilities of business intelligence systems due to the integration of BI systems with machine learning tools. BI system manufacturers develop different approaches to integrating machine learning into Business Intelligence systems to accommodate the various requirements of users. This study aims to demonstrate the advanced applications of artificial intelligence (AI) in Business Intelligence systems, depending on how AI algorithms are integrated into a BI system. You can order repliche rolex cheap and high quality UK replica watches here.
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