Book Recommender System Using Sci-kit learn N-neighbours

Overview

Model-Based-Recommender-Engine

I created a book Recommender System using Sci-kit learn's N-neighbours algorithm for my model and the streamlit library to deploy it as a web app.

The dependencies needed are python, streamlit, sklearn, and numpy.

Installing dependencies

Run the line below to install streamlit :

pip install streamlit

To install sklearn :

pip install sklearn

Pandas and Numpy would be installed alongside sklearn.

Happy Testing!!

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