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Sifra Frontend provides a modern, responsive interface for interacting with Sifra, your AI companion powered by Google's Gemini model. It offers real-time, personalized interactions and seamless usability across devices, enhancing your daily interactions with AI.
Chat with CSV is an interactive tool designed to enable users to upload CSV files and perform commands or queries on the data within the CSV file. It serves as an analytic tool, allowing users to interact with their data using natural language commands.
This repository explores the integration of Generative Pre-trained Transformers (GPT) with Langchain to enhance natural language processing applications. It demonstrates how to leverage the power of GPT models in combination with the Langchain framework to create sophisticated language understanding and generation tools.
QueryPDF is a full-stack application designed to facilitate PDF document analysis through natural language processing. Users can upload PDF documents, ask questions about their content, and receive generated answers.
Explore our "LLM Tutorials" GitHub repository for comprehensive guides on using large language models (LLMs) like Llama 2 with PyTorch. Discover practical examples, code snippets, and expert insights to enhance your NLP projects with the latest techniques in language modeling.
This repository contains my coursework for the 'GenAI Foundations for Java Developers' course by EPAM Systems. The course focuses on creating generative applications using Large Language Models with the Semantic Kernel SDK. The repo includes practical tasks and a final graduation task of a simple RAG application.
This project is a Streamlit-based web application designed for document-based question answering. It allows users to ask questions based on a collection of provided documents and receive accurate responses grounded in the document context.