-
Updated
Aug 3, 2025 - Jupyter Notebook
movie-recomendation-system
Here are 99 public repositories matching this topic...
A social platform for movie enthusiasts to explore, discuss, and review films. Designed to be your one-stop destination for all movie-related needs, offering a superior user experience and unparalleled depth of content.
-
Updated
Oct 24, 2024 - JavaScript
The 'MOVICO' project is a 'Movie Recommendation System'. It is an 'Artificial Intelligence-Machine Learning' project. Specifically, it is a 'Movie Recommendation System' that uses 'Collaborative Filtering Techniques'. The project 'Movie-Recommendation-System-MOVICO' was created as a project for the course 'Machine Intelligence', 'ue20cs302'.
-
Updated
Aug 16, 2024 - Jupyter Notebook
A modern movie recommendation web app built with React, TypeScript, and Material-UI. Discover movies, search by genre, and get details instantly.
-
Updated
Jun 17, 2025 - TypeScript
Tvflix is a simple and responsive web app built using Vanilla JS, leveraging the power of Postman and the TMDB API to seamlessly fetch and display comprehensive movie details. This project serves as a template for larger applications.
-
Updated
Sep 22, 2024 - CSS
RUMORS is a framework designed to implement RESTful APIs for a Recommender System using the MovieLens dataset. The system provides personalized movie recommendations based on user preferences and behavior.
-
Updated
Jan 4, 2025 - Python
🎬 It helps you discover films. Search for your favorite movies, get a "Surprise Me" pick, and explore trending movies—all while viewing live details like posters, trailers, ratings, and cast information.
-
Updated
Feb 14, 2025 - Jupyter Notebook
🎬 FastAPI-based Movie & TV Show Recommender using TMDb API 🎱| Search movies, get recommendations & browse top-rated content!
-
Updated
Mar 9, 2025 - Python
The Movie Information App is a Flutter-based mobile application that provides movie recommendations by utilizing the TMDB (The Movie Database) API. The app allows users to explore movies, view detailed information, and get recommendations based on their interests.
-
Updated
Oct 10, 2024 - Dart
A content-based recommender system that recommends movies similar to the movie the user likes and analyses the sentiments of the reviews given by the user Topics
-
Updated
Nov 10, 2024 - Jupyter Notebook
AI powered movie recommendation system using vector search and cosine similarity. The system takes user input in the form of a movie title or overview and returns the most similar movies based on their embeddings.
-
Updated
Dec 12, 2024 - Jupyter Notebook
🎥 Cine Suggest – Your Personalized Movie Companion CineSuggest helps you discover films you'll love based on what you already enjoy. Powered by intelligent recommendations and TMDB data, it's your perfect guide to movie nights.
-
Updated
Aug 2, 2025 - Python
this project is a movie recommendation system that combines multiple algorithms to provide personalized movie suggestions. The system utilizes content-based filtering, collaborative filtering, neural collaborative filtering, and gradient boosting techniques to generate accurate and diverse recommendations.
-
Updated
Feb 5, 2025 - Jupyter Notebook
This project builds a recommendation system for Netflix titles using embeddings generated by a all-mpnet-base-v2 model and an similarity search index built with FAISS.
-
Updated
Apr 29, 2025 - Python
Python-based movie recommendation engine that predicts and suggests movies to users based on their preferences and based on a given movie name
-
Updated
Jun 9, 2025 - Jupyter Notebook
🎬 A content-based movie recommendation system using NLP (CountVectorizer + Cosine Similarity) on TMDB 5000 dataset. Built with Python, scikit-learn, and Streamlit.
-
Updated
Jul 29, 2025 - Python
This is Recommendation System for Movies , which Recommend movies on basis of content similarity.
-
Updated
Feb 20, 2025 - Jupyter Notebook
Full-stack machine learning project that predicts viewer satisfaction (high ratings) on Netflix using demographic data and TMDB movie metadata. Includes EDA, XGBoost modeling, and real-time enrichment using the TMDB API.
-
Updated
Jul 16, 2025 - Jupyter Notebook
Movie recommendation system using Machine learning
-
Updated
Aug 29, 2024 - Jupyter Notebook
Movie Visual Features Extracted (MoViFex) dataset web-page
-
Updated
May 25, 2025
Improve this page
Add a description, image, and links to the movie-recomendation-system topic page so that developers can more easily learn about it.
Add this topic to your repo
To associate your repository with the movie-recomendation-system topic, visit your repo's landing page and select "manage topics."