Medical RAG QA App using Meditron 7B LLM, Qdrant Vector Database, and PubMedBERT Embedding Model.
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Updated
Dec 3, 2023 - HTML
Medical RAG QA App using Meditron 7B LLM, Qdrant Vector Database, and PubMedBERT Embedding Model.
Open multilingual construction cost database — 55K+ work items, 27K+ resources, 9 languages. Semantic search via Qdrant vector DB
This is a RAG implementation using Open Source stack. BioMistral 7B has been used to build this app along with PubMedBert as an embedding model, Qdrant as a self hosted Vector DB, and Langchain & Llama CPP as an orchestration frameworks.
A production framework for DSPy implementing the Teacher-Student pattern. Distill the reasoning of expensive models (Teacher) into optimized prompts for cheap, fast models (Student) to reduce inference costs by up to 50x.
FlutterGPT - AI chatbot powered by OpenAI API, Qdrant, LangChain and AWS Lambda
The objective of this project is to create a chatbot that can be used to communicate with users to provide answers to their health issues. This is a RAG implementation using open source stack.
Store and search string data using embeddings + Qdrant vector database via Flask. Fully containerized with Docker.
This is a comprehensive stock management system that integrates AI-powered tools for stock analysis, trade requests, and client activity tracking. It includes a backend built with Python, a frontend with HTML, and services for PDF processing, stock queries, and real-time communication.
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