Image recommendation service with image on the input that outputs most similar images from database.
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Updated
Sep 19, 2020 - Python
Image recommendation service with image on the input that outputs most similar images from database.
Similar Song Recommendation with Python
A cloud service that collects buyer property preference data in real-time, puts it through a data streaming pipeline and feeds it into the compute layer, where data is analyzed in the ML pipeline and property recommendations are adjusted based on new buyer preferences.
Evaluation and comparison of 3 different recommendations models for web shopping service simulation.
Graph Representation Learning via Causal Diffusion for Out-of-Distribution Recommendation. WWW, 2025.
Project about listing services, filtering, using a recommendation system.
Fashion Recommendation System using OpenAI’s CLIP model to generate relevant suggestions based on text or image queries. This project demonstrates multimodal search capability (text ↔ image) for fashion items using a dataset from Kaggle.
A database that leverages MySQL and python to recommend users items that best fit there interests using the cosine similarity equation
A movie recommendation system based on collaborative filtering
Project Sistem Rekomendasi Film IMDb ini dibuat untuk menemukan film yang direkomendasikan berdasarkan rating tertinggi dengan metode Content-Based Filtering.
NLP-powered movie recommendation system using TF-IDF and cosine similarity with real-time OMDB API integration and Streamlit interface.
A cloud-based video game recommendation system using deep learning, ML, and naive approaches to suggest personalized gaming experiences. This full-stack AWS-hosted application features a responsive React frontend, WebSocket-based real-time recommendations, and intelligent backend processing to help gamers discover their next favorite games.
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