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he project aims to automatically extract text and transcripts from YouTube videos using Google's Gemini API. The video transcript API is used to fetch transcript details from YouTube videos. A Streamlit app is created to take the YouTube link, display the video thumbnail, and generate a summary upon clicking the "Get Summary" button.
A Fact chatbot is a project in which it read a txt file which consist all facts ahead of time and answer the user with some useful information regarding the same on the basis of facts provided in text file.
This repository contains my implementation for the "Generative AI with Large Language Models" course offered by Coursera. The course provides a comprehensive understanding of generative AI and explores how large language models (LLMs) can be used to create value in various real-world applications.
Empowering financial journeys with AI. Our solution fosters financial literacy, an essential element in empowering individuals, communities, and nations. Financial literacy leads to financial inclusion, a key driver of economic growth and poverty reduction.
The Pokémon Card Generator - a Java Spring Boot Application integrated with a Telegram Bot, designed to unleash the creative power of Generative AI models!
A proof of concept made during my thesis: Is AI advanced enough to generate artpieces that are not seperatable from real art based on an analysis of news websites
A Streamlit app based on Python that fetches top news articles from the News API, generates a summary of each article using the OpenAI GPT-3 model, analyzes the sentiment of the article using the NLTK library, and classifies the article into different categories based on keywords.
Using prompt engineering to convince the generative AI Model (Bard) that it is able to both code and analyze the air pollutant data and the output it does.
Using LLMs the application aims to provide users with relevant, personalized information about individuals to facilitate smoother, more engaging conversations. Ideal for rapid rapport building in networking events, sales pitches, or social gatherings, it offers foundational knowledge about a person's professional background and interests.