End to End MLOps Pipeline on Optimizing Revenue through Dynamic Pricing using Databricks

Learning Objectives
Overview
GlobalMart, a leading retailer in the fast-moving consumer goods (FMCG) sector, offers a wide range of products to its diverse customer base. Among its extensive portfolio, Tide stands out as one of the prominent detergent brands.
However the product faces increasing competition in the detergent market due to aggressive pricing strategies by rival brands. This has led to fluctuating customer demand and inventory inefficiencies.
The company seeks to implement a data-driven Dynamic Pricing Strategy to optimize Tide’s pricing decisions.
Your task as a data scientist is to analyze sales, competitor, customer behavior, and inventory data to :
Identify key factors influencing Tide's sales and demand. Optimize pricing to maximize revenue while maintaining demand and inventory balance. By solving this challenge, you will enable GlobalMart to regain its competitive edge, improve profitability, and align pricing with market dynamics.
Prerequisites
- Building ML Solutions on Databricks
- Understanding of managing MLlifecycle using MLFlow
- Working knowledge of Inference Endpoints