It is a movie recommender web application which is developed using the Python.

Overview

Movie Recommendation 🍿 System

forthebadge made-with-python
Python 3.6

Watch Tutorial for this project

Source

Features

  • Simple responsive UI
  • Movie Story
  • Movie Posters
  • Directors & Cast information
  • Total ratings
  • IMDB Ratings

Usage

  • Clone my repository.
  • Open CMD in working directory.
  • Run following command.
    pip install -r requirements.txt
    
  • App.py is the main Python file of Streamlit Web-Application.
  • To run app, write following command in CMD. or use any IDE.
    streamlit run App.py
    
  • Movie_Data_Processing.ipynb is the notebook of data processing.
  • Classifier.py is the main file which is containing a KNN Algorithm.
  • For more explanation of this project see the tutorial on Machine Learning Hub YouTube channel.

Screenshots

Movie based Recommendation

Genre based Recommendation

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Owner
Kushal Bhavsar
Data Science Enthusiastic | Learning the new things just like Neural Networks.
Kushal Bhavsar
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