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Recommender-Systems-for-Grocery-Retail

Objective

• To develop a Recommender System that suggests groceries based on customers preferences & their purchase history

Approach

• Performed memory optimization & EDA to identify correlations and anomalies that aided in model development

• Implemented K-Means Clustering (based on Elbow Method) for personalized recommendations to similar users

• Generated recommendations leveraging association rules derived from lift score for every product pair in clusters

• Constructed an NLP Search Engine for products based on cosine similarity between count vectors post stemming

• Built SVD model for new users | Reduced RMSE by 60% | Used diversity metric for overall varied recommendations

Outcome

• Deployed Flask based Web app providing recommendations to the users based on their ratings and past purchases

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