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Purpose

As a team we developed this Consumer Products Recommender system as our final project at the 10-week bootcamp at Le Wagon. The goal was to enhance the performance of an eCommerce retailer through implementing a recommendation system which aims to increase the conversion rate and average order value of the online store

Structure of the project

To create a valuable customer journey on the eCommerce platform, we defined 3 important momentums where we can influence customer behavior in order to increase the conversion rate and number of purchases:

  • Catch attention : displaying the most popular brands and best-selling products
  • Facilitate choice : providing a meaningful selection of products that are relevant based on the customer's first click
  • Enrich basket : using the cross-selling method, the system recommends additional complementary product to increase the unit per transaction.

this is the streamlit