Jeff Rix Navya Karuturi Vineela Tatineni.

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Presentation transcript:

Jeff Rix Navya Karuturi Vineela Tatineni

star schema

Extraction –Transformation-Loading Extracted data of different vehicles region wise by external websites. Transformed and sorted accordingly Loaded the Data into Data Source and connected to the Analysis Services.

Vehicle Data Source View

Dimension Attributes for Dealerships

Creating Hierarchy

Total Sales of the Vehicles sold by each Region, state , City and Dealership Name

Dimension Attributes for Date

Total Sales For each Day, Month, Quarter and Year..

Reports: Sales By Dealership sort by state

Highest Sales By vehicle Type Determine Sales by State and Vehicle name

Sales by Quarter Sales by Region for 4th Quarter

Sales By Month for State [Houston]

Conclusion : All the Business Needs For the Ford Company Are Fulfilled.

Any Queries