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          We took a four-phased approach to this challenge:

          • Data from disparate?sources were consolidated into a single data warehouse, improving the usability of data
          • The analytical data layer was then prepared after carrying out data treatment procedures and applying business rules that were appropriate for the client’s business
          • Elementary data analysis helped classify stores based on potential products they could house
          • A regression model was then applied to identify the impact of changing assortment quantities on the top-line sales and the correlation model helped identify the af?nity between different products
          • The combined insights from the models helped us arrive at the optimal assortment strategy for the client.

          KEY BENEFITS

          • Our easy-to-use solution enabled the client to identify closely related products and plan assortments accordingly
          • It included recommendations on the mix of products that a store should carry and store-level revenue prediction based on the assortment mix


          Our collective efforts paid off when the client’s Stock Keeping Unit (SKU) level prediction enhanced the weekly sales by 6%.