Skip to content

Priya200227/sql-data-warehouse-project

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

36 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Data Warehouse and Analytics Project

This project demonstrates a comprehensive data warehousing and analytics solution, from building a data warehouse to generating actionable insights. Designed as a portfolio project, it highlights industry best practices in data engineering and analytics.


Data Architecture

The data architecture for this project follows Medallion Architecture Bronze, Silver, and Gold layers:

  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.

Project Overview

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.

This repository is an excellent resource for professionals and students looking to showcase expertise in:

  • SQL Development
  • Data Architect
  • Data Engineering
  • ETL Pipeline Developer
  • Data Modeling
  • Data Analytics

Important Links & Tools:

Everything is for Free!


Project Requirements

Building the Data Warehouse (Data Engineering)

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.

About

Building a modern warehouse with SQL Server , including ETL processes , data modeling and analytics.

Topics

Resources

License

Stars

Watchers

Forks

Languages