Lawrence-Krukrubo / Building-a-Content-Based-Movie-Recommender-System
Applying Content-Based filtering and Matrix-Algebra to build a Movie-Recommender-System in Pandas
☆22Updated 4 years ago
Related projects ⓘ
Alternatives and complementary repositories for Building-a-Content-Based-Movie-Recommender-System
- Implemented User Based and Item based Recommendation System along with state of the art Deep Learning Techniques☆60Updated 4 years ago
- It is a content based recommender system that uses tf-idf and cosine similarity for N Most SImilar Items from a dataset☆71Updated 4 years ago
- A Content Based And A Hybrid Recommender System using content based filtering and Collaborative filtering☆17Updated 5 years ago
- This repository contains the code for building movie recommendation engine.☆79Updated 6 years ago
- Implementing user-based and item-based collaborative filtering algorithms on MovieLens dataset and comparing the results.☆10Updated 3 years ago
- Implementing Content based and Collaborative filtering(with KNN, Matrix Factorization and Neural Networks) in Python☆56Updated 4 years ago
- Recommendation Systems This is a workshop on using Machine Learning and Deep Learning Techniques to build Recommendation Systesm Theory:…☆174Updated 4 months ago
- A job recommendation system that recommends IT jobs to IT job seekers☆49Updated 4 years ago
- Designed a movie recommendation system using content-based, collaborative filtering based, SVD and popularity based approach.☆28Updated 4 years ago
- Knowledge-based, Content-based and Collaborative Recommender systems are built on MovieLens dataset with 100,000 movie ratings. These Rec…☆117Updated last year
- My Graduate Capstone Project - This is a Product Recommendation System for a Local Wholesaler in India, using Python and Machine Learning…☆28Updated 3 years ago
- Movie Recommender System with Django.☆71Updated 4 months ago
- Built on data from Pluralsight's course API fetched results. Works with model trained with K-means unsupervised clustering algorithm.☆46Updated 5 years ago
- Recommendation System using ML and DL☆455Updated last year
- 4 different recommendation engines for the MovieLens dataset.☆421Updated 5 years ago
- Movie Recommendation System with Complete End-to-End Pipeline, Model Intregration & Web Application Hosted. It will also help you build s…☆115Updated 11 months ago
- Business setting up their recommendation system for first time without any product rating history, & Amazon/Netflix type of recommendatio…☆88Updated last year
- This repository contains code how to build job recommendation engine using Kaggle 'Job Recommendation Challenge' dataset☆63Updated 6 years ago
- Basic Movie Recommendation Web Application using user-item collaborative filtering.☆214Updated 2 years ago
- A step-by-step tutorial on developing a practical recommendation system (retrieval and ranking) using TensorFlow Recommenders and Keras.☆175Updated 5 months ago
- This repository contains collaborative filtering recommender system build in Python with surprise package to predict book ratings in Book…☆26Updated 4 years ago
- Contains code which covers various methods for recommending movies, some of the methods include matrix factorisation , deep learning base…☆42Updated 6 years ago
- New clustering of Udemy courses and building a recommender system based on course features☆18Updated 5 years ago
- A Machine Learning Case Study for Recommendation System of movies based on collaborative filtering and content based filtering.☆35Updated 5 years ago
- Implemented Using Machine Learning (K-Means Clustering Also) in Python☆14Updated 4 years ago
- Movie Recommendation System using the MovieLens dataset☆19Updated 6 years ago
- Hybrid recommedation for talents☆18Updated 5 years ago
- This is a course recommendation system that generates recommendation based on the study patterns and cognitive level of the students. The…☆30Updated 4 years ago
- A Hybrid recommendation engine built on deep learning architecture, which has the potential to combine content-based and collaborative fi…☆29Updated 6 years ago