Discover Movie & TV Show Trailers web app built with Angular 18 with TMDB API
-
Updated
Aug 13, 2024 - TypeScript
Discover Movie & TV Show Trailers web app built with Angular 18 with TMDB API
Movie watching website with multiple servers . Integrates TMDB API . Streaming options available.
Pick 3 Movies, and Let Us Find Your Next Must-Watch!
Explore new movies , Rate them & add it to your List. You can also rate your favorite movie and add the movie to your own personalised list. The data of the list will also be stored in your browser so it is a complete app.
Movie trailer streaming app.
Movie Recommendation System A TF-IDF based movie recommendation system that suggests movies based on your preferences. With a database of 10,000 movies, this system is designed to enhance your movie-watching experience by recommending films similar to the ones you've enjoyed.
An ML-based movie recommendation system built using a dataset from Kaggle. This project preprocesses movie data to generate recommendations based on cosine similarity. The system uses Python libraries such as Pandas, NumPy, NLTK, and sklearn for data processing and machine learning. The user interface is developed with Streamlit.
Welcome to Stream Suggester Bot, a Telegram bot that provides personalized movie recommendations based on your preferred genre and language. Powered by The Movie Database (TMDb) API, this bot fetches the most popular movies tailored to your choices.
Frontend Website like IMDB using React.JS and Redux, TMDB
End to End Machine Learning Project using Content Based Filtering
A web app that allows you to keep track of trending movies and watch their trailers. "Netflix", That's old news😁
Netflix GPT is a conversational web app that lets users explore and discover movies and TV shows on Netflix through a chatbot interface. Powered by GPT, the bot provides personalized recommendations, details about titles, and even helps users find hidden gems based on their preferences.🚀
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.
This project features a Movie Recommendation System that combines cosine similarity for personalized movie suggestions with sentiment analysis of real-time reviews from IMDb. By analyzing user sentiments, the system provides insights into how well-received a movie is by audiences, enhancing the recommendation experience.
Flutter mobile application for movie fans!
An AI-powered app that recommends movies based on the user's emotional state.
A dynamic website that provides real-time rankings of the best movies, allowing users to see up-to-date information on top-rated films. The site integrates with a public API to fetch movie data and updates the rankings continuously based on user ratings and reviews.
Add a description, image, and links to the movie-recommendation-app topic page so that developers can more easily learn about it.
To associate your repository with the movie-recommendation-app topic, visit your repo's landing page and select "manage topics."