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This repository contains my research work on building the state of the art next basket recommendations using techniques such as Autoencoders, TF-IDF, Attention based BI-LSTM and Transformer Networks
Using Apriori Algorithm to do Market Basket Analysis of Customers purchasing behaviours. It can predict what the customer is going to buy next by looking at the products he is buying.
This repository consists of collaborative filtering Recommender systems like Similarity Recommenders, KNN Recommenders, using Apple's Turicreate, A matrix Factorization system from scratch and a Deep Learning Recommender System which learns using embeddings. Besides this Market Basket Analysis using Apriori Algorithm has also been done. Deployme…
The project involves conducting a thorough analysis of Point of Sale (POS) Data for providing recommendations through which a grocery store can increase its revenue by popular combo offers & discounts for customers.
Complete package for all Data Science models using R. Starting form Preprocessing, Data Manipulation, Feature Engineering, Model Building, and Model Validation.
Based on information from historical transactions, as well as from customer and product meta data, tried to offer customers with personalized fashion recommendations tailored specifically to their preferences.
A simple Ionic + Angular Barcode Scan app for grocery stores backed with RESTful Web Services on Spring Boot - Participant of App Challenge 2020 - Outcome of Enterprise Mobile Application Development Master's Degree Course @ UniSA
The data set provided constitutes the data of a Café Chain for one of its restaurants. We need to do a thorough analysis of the data and come up with the following analysis: •Exploratory Analysis •Menu Analysis •Price Analysis