The Client: A leading online grocery, food-tech company based out of Mumbai, India
Client Background: The company was one of Mumbai’s premier online convenience stores. They have revolutionized the grocery shopping experience making each step of the shopping process as delightful as possible. They grocery stocks over 14,000 products and regularly introduces new products under a wide array of categories.
Geography Asia Pacific-India
Industry E-Commerce
PROBLEM STATEMENT
- Classification of a typical purchase basket from a customer
- Deciphering Customer Cohorts mapped to the purchase basket
- Identifying the best promotional pack based on the Customer Cohorts developed
- Designing Customer loyalty programs based on the type of basket purchase
M76 ANALYTICS APPROACH
- Organize relevant transactional details like Average order size/user, Categories, Sub categories, product and SKU’s
- Profile all possible types of Food baskets and categorize the basket types
- Qualify categorized baskets using capabilities such as zone, categories, brand names, product name, subcategories and billing amount
- Through our statistical processing engine, collated inputs were processed statistically to arrive at FIVE statistically separate categories of Basket Types (Typical Food baskets) – Customer Cohorts
- Customer Cohorts (logical customer groups) were further mined to correlate to their demographic parameters like Gender, Age, Zip code – Region/Zone
- Repeat Customer Analysis and identification of their cohorts were also carried out