Skip to content

Designed and implemented a complete Data Warehouse solution, defining data architecture, designing multi-layer (Bronze, Silver, Gold) E.T.L. pipelines, and building star schema models in SQL scripts to transform and load data from multiple CRM and ERP systems, with final data visualized using Tableau.

License

Notifications You must be signed in to change notification settings

Nachoxt17/Data-Warehouse-SQL-End-to-End-E.T.L.

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

6 Commits
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Data Warehouse SQL End-to-End E.T.L.

This project presents a complete data warehouse solution, integrating CRM and ERP data into a structured, multi-layer (Bronze, Silver, Gold) ETL pipeline. Using SQL, we design and build data models including star schemas to support high-quality business reporting. Final datasets are visualized with Tableau dashboards, offering actionable insights and clear business value.

Project Features:

💾 Data architecture and layer design (Bronze, Silver, Gold). ⚙️ SQL-based ETL pipelines: data extraction, transformation, loading. 🔗 Integration of CRM and ERP data sources. 📊 Star schema and dimensional modeling. 📈 Tableau dashboard visualizations for business insights.

Technologies Used:

  1. Bronze Layer: Stores raw data as-is from the source systems. Data is ingested from CSV Files into SQL Server Database.
  2. Silver Layer: This layer includes data cleansing, standardization, and normalization processes to prepare data for analysis.
  3. Gold Layer: Houses business-ready data modeled into a star schema required for reporting and analytics.

Description

This project involves:

  1. Data Architecture: Designing a Modern Data Warehouse Using Medallion Architecture Bronze, Silver, and Gold layers.
  2. ETL Pipelines: Extracting, transforming, and loading data from source systems into the warehouse.
  3. Data Modeling: Developing fact and dimension tables optimized for analytical queries.
  4. Analytics & Reporting: Creating SQL-based reports and dashboards for actionable insights.

Project Requirements

Objective

Develop a modern data warehouse using SQL Server to consolidate sales data, enabling analytical reporting and informed decision-making.

Specifications

  • Data Sources: Import data from two source systems (ERP and CRM) provided as CSV files.
  • Data Quality: Cleanse and resolve data quality issues prior to analysis.
  • Integration: Combine both sources into a single, user-friendly data model designed for analytical queries.
  • Scope: Focus on the latest dataset only; historization of data is not required.
  • Documentation: Provide clear documentation of the data model to support both business stakeholders and analytics teams.

BI: Analytics & Reporting (Data Analysis)

Objective

Develop SQL-based analytics to deliver detailed insights into:

  • Customer Behavior
  • Product Performance
  • Sales Trends

About

Designed and implemented a complete Data Warehouse solution, defining data architecture, designing multi-layer (Bronze, Silver, Gold) E.T.L. pipelines, and building star schema models in SQL scripts to transform and load data from multiple CRM and ERP systems, with final data visualized using Tableau.

Topics

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages