Multi AI agents for customer support email automation built with Langchain & Langgraph
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Updated
Feb 13, 2025 - Python
Multi AI agents for customer support email automation built with Langchain & Langgraph
Multi Generative AI agents for customer support email automation built with Golang, Google-GenAi and Customgraph solution
Learn Retrieval-Augmented Generation (RAG) from Scratch using LLMs from Hugging Face and Langchain or Python
🛡️ Web3 Guardian is a comprehensive security suite for Web3 that combines browser extension and backend services to provide real-time transaction analysis, smart contract auditing, and risk assessment for decentralized applications (dApps).
RAG-API: A production-ready Retrieval Augmented Generation API leveraging LLMs, vector databases, and hybrid search for accurate, context-aware responses with citation support.
This python powered AI based RAG Scraper allows you to ask question based on PDF/URL provided to the software using local Ollama powered LLMs
🤖 NoCapGenAI is a Retrieval-Augmented Generation (RAG) chatbot built with Streamlit, Ollama, MongoDB, and ChromaDB. It features a clean, modern UI and persistent vector memory for context-aware conversations. Easily integrates with Ollama-supported models like phi3:mini, llama3, mistral, and more. Designed to support customizable assistant modes
This workflow assistant is a fast and easy way to convert natural-language user requests into valid workflow configuration snippets by using retrieval (from existing real configs) + an LLM prompt.
This project implements a Retrieval-Augmented Generation (RAG) based chatbot designed to handle university-related queries using natural language understanding. It combines semantic search with generative AI to provide precise, context-aware answers to students, faculty, and visitors.
BetterRAG: Powerful RAG evaluation toolkit for LLMs. Measure, analyze, and optimize how your AI processes text chunks with precision metrics. Perfect for RAG systems, document processing, and embedding quality assessment.
pdfKotha.AI - Interact with PDFs using AI! Upload, ask questions, and get instant answers from Google's Gemini model. Streamline your research and information retrieval tasks effortlessly
A Customizable RAG (Retrieval Augmented Generation) App
A supportive server to handle telegram messages using telegram bot API, return back the response to the user with RAG application techniques
AI-powered platform that turns study notes into podcast episodes with two hosts and lets you chat with documents.
A basic RAG application for inventory management. Provides real-time stock updates, checks availability, suggests similar products, and generates responses to both customer and manager queries .
ML Bot is a RAG Application built using google/gemma-2b-it local LLM
📧 Send personalized mass emails securely with Mailflow, a CLI tool built in Python using only standard libraries and no external dependencies.
RAG-powered PDF QA system with self-reflection and multiple retrieval strategies (Stuff/Map Reduce/Refine). Includes monitoring via Langfuse & LangSmith and containerization with Docker
This project processes and retrieves information from PDF file or PDF collection. It leverages Qdrant as a vector database for similarity searches and employs a Retrieval-Augmented Generation (RAG).
🚀 VIDGENIUS AI — An open-source RAG-powered app that transforms YouTube videos into interactive chat experiences and smart, structured notes. Paste any video link with language code, translate instantly, extract insights, and chat with the content — all in one click.
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