Building a business intelligence dashboard for a Lebanese company
DOI:
https://doi.org/10.5585/iptec.v11i1.24603Keywords:
Business Intelligence, Dashboards, Data, ETL, Modelling.Abstract
This project developed a business intelligence process for a Lebanese company to enhance their financial management. The process involved creating a data model based on the company's needs and data availability, integrating their data into a physical database using Python and PostgreSQL, and generating dashboards with Power BI to visualize and analyse their revenue numbers. The project outcomes will help the company gain insights into their business performance, optimize their revenue and profit, and identify data entry issues that may affect their results. The project also provides a foundation for further data integration and analysis.
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