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Multimodal RAG-Based Product Recommendation System

This project focuses on developing a Multimodal Retrieval-Augmented Generation (RAG) system for personalized recommendations in the fashion and cosmetics domains. The system integrates advanced AI techniques, including LLMs (Large Language Models) and multimodal embeddings, to suggest eco-friendly and trending products based on user preferences. By combining textual descriptions, product images, sustainability certifications, and trend data, the system creates a comprehensive, user-driven recommendation platform.


Key components of the project include a Flask-based backend for API management, a React frontend for user interaction, and a vector database to store multimodal embeddings efficiently. Leveraging technologies like OpenAI API, Gemini, and embedding services such as Hugging Face, the system enables real-time recommendations with enhanced accuracy and relevance. This platform aims to bridge the gap in sustainable fashion and cosmetics by offering environmentally conscious, trend-aware, and user-personalized suggestions through a user-friendly web interface.


Team Members

Name Surname Student Number Github Account
Hazal KANTAR 202111036 hazalkntr
Ahmet Doğukan GÜNDEMİR 202111033 dogukangundemir
Ali Boran BEKTAŞ 202111001 Boranbektas
Hikmet Berkin BULUT 202111057 bekX0

Advisor

  • Dr. Serdar Arslan