Visualization for a Retrieval-Augmented Generation (RAG) Assistant 🤖➕📚🟰❤️
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Updated
Apr 7, 2024 - Python
Visualization for a Retrieval-Augmented Generation (RAG) Assistant 🤖➕📚🟰❤️
MindSQL: A Python Text-to-SQL RAG Library simplifying database interactions. Seamlessly integrates with PostgreSQL, MySQL, SQLite, Snowflake, and BigQuery. Powered by GPT-4 and Llama 2, it enables natural language queries. Supports ChromaDB and Faiss for context-aware responses.
IntelliSearch is an advanced retrieval-based question-answering and recommendation system that leverages embeddings and a large language model (LLM) to provide accurate and relevant information to users.
ZeroPal: A concise RAG example for LightZero QA.
In this project, I built a chatbot to answer customer simple inquiries about restaurants, such as displaying the food menu and contact, and providing information about the number of available tables for reservation.
MedChat - ✨RAG based AI Chatbot🤖 for Indian Medicines 🇮🇳
Pinecone Explorer: Unleash text exploration's power with Pinecone Explorer. Efficiently process and query large datasets using Pinecone's vectors, langchain's text handling, and OpenAI's language model.
LangChain framework provides chat interaction with RAG by extracting information from URL or PDF sources using OpenAI embedding and Gemini LLM
Final Project for Information Retrival, this is an implementation that uses numpy of a vector store and a RAG PoC with ollama
AI agent for automated content moderation of movies and books, employing Retrieval-Augmented Generation (RAG) and natural language processing Large Language Models to identify, discover, and summarize potentially concerning content for informed decision-making.
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