This repository will explain the basic implementation of different types of Recommendation systems using python.
-
Updated
Sep 18, 2018 - Jupyter Notebook
This repository will explain the basic implementation of different types of Recommendation systems using python.
Hotel Recommendation system based on Content, Collaborative, Social Network Based Systems
🌟 Production-ready AI news aggregation API with 11 intelligent features ✨ | Multi-source aggregation (70+ sources) | Gemini AI enhancement | Personalized recommendations | Built with Node.js + TypeScript + MongoDB 🚀
AI-powered article recommender using sentence embeddings and FAISS for semantic search. Includes a FastAPI backend and Streamlit frontend.
🤖📚 Machine learning model which predicts the likability of unread storybooks based on a child's previously read storybooks.
Recommendation System & it's types
A trust based social network for user engagement and protection.
Content, Collaborative, and Hybrid Movie recommendation system
Interactive Power BI dashboard analyzing Netflix titles, viewing patterns, and strategic recommendations.
Content-based filtering uses item features to recommend other items similar to what the user likes, based on their previous actions or explicit feedback. I have applied basic content-based recommendation system using python.
An RESTful API paired with a content scraper that analyzes popular YouTube content and arranges it in interesting ways for the end user (via API endpoints).
A metadata-driven movie similarity engine built from The Movies Dataset on Kaggle. The system preprocesses raw metadata, stores it in SQLite, generates sparse feature vectors, and computes similarity rankings using cosine similarity. A FastAPI backend serves results through a UI and API layer, with the full application deployed on Render.
Recommendation system projects using Knowledge, Content, and Collaborative based.
Audiovisual content discovery and personalized recommendations application
🎬 Explore a Netflix-inspired collection of creative projects, offering randomness and enjoyment for entertainment enthusiasts.
🎲 Explore demo files in this randomly created repository inspired by Netflix, showcasing creative solutions and engaging project ideas.
Add a description, image, and links to the content-recommendation topic page so that developers can more easily learn about it.
To associate your repository with the content-recommendation topic, visit your repo's landing page and select "manage topics."