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Building a model for prediction on Black Friday sales dataset

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BlackFriday

Building a model for prediction on Black Friday sales dataset

Overview:

A retail company “ABC Private Limited” wants to understand the customer purchase behavior (specifically, purchase amount) against various products of different categories. They have shared purchase summary of various customers for selected high volume products from last month. The data set also contains customer demographics (age, gender, marital status, city_type, stay_in_current_city), product details (product_id and product category) and Total purchase_amount from last month.

Dataset Information:

Column ID Column Name Data type Description Masked
0 User_ID int64 Unique Id of customer False
1 Product_ID object Unique Id of product False
2 Gender object Sex of customer False
3 Age object Age of customer False
4 Occupation int64 Occupation code of customer True
5 City_Category object City of customer True
6 Stay_In_Current_City_Years object Number of years of stay in city False
7 Marital_Status int64 Marital status of customer False
8 Product_Category_1 int64 Category of product True
9 Product_Category_2 float64 Category of product True
10 Product_Category_3 float64 Category of product True
11 Purchase int64 Purchase amount False

Libaries uses:

  • Numpy
  • Pandas
  • Sckit-learn
  • pandas-profiling
  • Seaborn
  • matplotlib

ScreenShot Of Application:

  • Taking input from user App Screenshot

  • Output of the given data App Screenshot

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