Case Study
www.humarashop.com is an e-commerce initiative of Hindustan Unilever Limited (HUL), which helps small retailers have an online presence by creating a different page for each store and carrying out the delivery for them.
HUL’s aim is to become the largest e-commerce player in the grocery/FMCG segment. The company believes that the key to this lies in understanding the changes in consumer behavior and preferences and adapting accordingly.
HUL is India’s largest, fast-moving consumer goods company with a heritage of over 80 years in India. On any given day, two billion people use Unilever products to look good, feel good, and get more out of life.
The company is a subsidiary of Unilever with sales in over 190 countries and an annual sales turnover of around €52.7 billion. HUL is one of the most innovative companies in the world with more than 35 brands spanning 20 distinct categories.
Understand consumer preferences in small retail stores in neighborhoods by capturing sales data through the point of sales system and leverage it with innovative Machine Learning (ML) and analytical models.
HUL provided the sales data sets from the top 6 POS systems. The company invited data scientists and Machine Learning enthusiasts to submit their ideas and build applications.
The Machine Learning innovation campaign was conducted in three phases:
HUL selected Machine Learning and Analytics as the theme of innovation. The participants were invited to submit their ideas on any of the given themes. This ideation phase lasted for 40 days. A total of 130+ ideas submitted from 2004+ teams.
In this phase, the best ideas were shortlisted. Sprint’s proprietary algorithm and analytics-aided decision making allowed them to segregate transformative and incremental ideas and eliminate the rest.
The 12 shortlisted teams were invited to present their applications.
Functionality: Accurate prediction of data by extrapolation using ML algorithms
Theme: Analytics
The central idea focused on the following points:
The team was successful in filtering the data with prominent accuracy. Accurate predictions were made by extrapolation using Machine Learning algorithms.
Functionality: Auto-scalable and low-cost analytics solution for small retail stores
Theme: Analytics
The solution included the following:
Functionality: ML application for prediction of product sales and demand
Theme: Machine Learning
Offline software which helps small retail vendors manage their inventory and increase sales by creating the following features: