Advance Resume Parser: This project was built during the Mined Hackathon organized by Nirma University.
-
Updated
Mar 25, 2024 - Jupyter Notebook
Advance Resume Parser: This project was built during the Mined Hackathon organized by Nirma University.
Build Generative AI, custom Question/Answer or Information Retrival Application using LlamaIndex, Google Gemini
Use Cohere and OpenSearch to analyze customer feedback in an MLOps pipeline
SSAT Analogy Solver: Test Vector Embedding Against Web Scrapped Questions
Image Vector Similarity Search with Azure AI Vision (Florence model) and Azure Cosmos DB for PostgreSQL
Python Implementation of lexical vector embedding similarity scoring, zero-shot classification of images and n-gram based scoring to compare textual summaries
This tool provides a fast and efficient way to convert text into vector embeddings and store them in the Qdrant search engine. Built with Rust, this tool is designed to handle large datasets and deliver lightning-fast search results.
Developed using custom data for answering questions from a given domain knowledge
Hands-on with Milvus vector db
Know Your Docs: Upload your documents and get instant answers to any questions related to them with this document knowledge platform
Detection as well as identification of faces
Pawsitive Retrieval RAG Project - Erdos Institute Deep Learning Boot Camp - Spring 2024
This repository demonstrates a workflow that integrates LangChain with a vector store (Pinecone) to enable semantic search and question answering using large language models (LLMs).
Intelligent note taking Web App with AI Integration
Learning semantic embeddings from OSM data: A Pytorch implementation of the loc2vec general method outlined in: https://sentiance.com/loc2vec-learning-location-embeddings-w-triplet-loss-networks.
Vector Embedding Representations of Road Cycling Riders and Races
paper: vecdb benchmark stats for dec 2023
Add a description, image, and links to the vector-embeddings topic page so that developers can more easily learn about it.
To associate your repository with the vector-embeddings topic, visit your repo's landing page and select "manage topics."