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IBM Recommendation Engine

Overview

This project analyzes the interactions that users have with articles on the IBM Watson Studio platform, and the goal of this project is to create a recommendation system that shows the articles that are most relevant to a specific user.

Requirements

  • pandas
  • numpy
  • matplotlib
  • pickle

Features

The repository contains a Jupyter notebook with the analysis and a copy of it in html format along with test scripts used in the notebook. The tasks involved are Exploratory Data Analysis, Rank Based Recommendations, User-Based Colloborative Filtering and SVD-Matrix Factorization.

Acknowledgements

Thank you IBM and Udacity for providing an opportunity to work on this project!