Zep | The Memory Foundation For Your AI Stack
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Updated
Nov 28, 2024 - Go
Zep | The Memory Foundation For Your AI Stack
The Fast Vector Similarity Library is designed to provide efficient computation of various similarity measures between vectors.
The Identity layer for the agentic world
State-of-the-art CLIP/SigLIP embedding models finetuned for the fashion domain. +57% increase in evaluation metrics vs FashionCLIP 2.0.
Question Answering Generative AI application with Large Language Models (LLMs) and Amazon OpenSearch Service
Question-Answering App Over Your Own Data with LLamaindex and ElasticSearch !
Memory Management Service, a Long Term Memory Solution for AI
Simple and pure Julia-based implementation of ChatGPT retrieval plugin logic
High-level ElasticSearch client for Julia
Hybrid Search demo on Movies Dataset using Couchbase with Native Python SDK & LangChain Vector Store integration & Streamlit
DocuMentor is a sophisticated chatbot application designed to assist users in extracting valuable information from uploaded PDF documents. Users can upload PDF files, chat with the AI chatbot to ask questions or seek information related to the document, and receive well-informed responses.
🔎 A vector based image search engine using Visual Transformer model type.
How to use configure haystack to use weaviate
MediCopilot uses AI to assist healthcare professionals
⚡️ Build quick LLM pipelines for AI applications
Q&A Chatbot Demo using Couchbase, LangChain, OpenAI and Streamlit
This project demonstrates using `Elasticsearch` and vector search techniques to efficiently find answers to user questions in FAQ documents by leveraging embeddings and evaluating search performance with hit rate and mean reciprocal rank (MRR).
RAG Vector Search with MongoDB, Hugging Face and Node JS
This Python Flask application is designed to process and rank resumes based on job descriptions. It uses Azure's Document Analysis Client for document processing, and a MongoDB database for storing job descriptions and resumes. The application also generates embeddings for the processed documents using AzureOpenAI.
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