Understanding Embeddings in Large Language Models - LlamaIndex and Chroma DB
Offered By: Samuel Chan via YouTube
Course Description
Overview
Dive deep into the world of embeddings, a crucial component of Large Language Models (LLMs) like GPT-4, Alpaca, and Llama. Explore the fundamental concept of embeddings, their significance in AI-powered tools, and their role in representing various types of data, including text, images, and potentially audio and video. Learn how embeddings function as the AI-native method for data representation, making them ideal for integration with AI algorithms. Discover the practical applications of embeddings using LlamaIndex (GPT Index) and Chroma database, and understand how these tools facilitate the connection between LLMs and external data sources. Gain insights into the standardization of developer experiences in text embeddings, vector stores, and downstream applications through tools like LangChain. Explore real-world examples and code implementations to enhance your understanding of embeddings in the context of modern AI systems.
Syllabus
Understanding Embeddings in LLMs (ft LlamaIndex + Chroma db)
Taught by
Samuel Chan
Related Courses
Building a Queryable Journal with OpenAI, Markdown, and LlamaIndexSamuel Chan via YouTube Building an AI Language Tutor with Pinecone, LlamaIndex, GPT-3, and BeautifulSoup
Samuel Chan via YouTube Locally-Hosted Offline LLM with LlamaIndex and OPT - Implementing Open-Source Instruction-Tuned Language Models
Samuel Chan via YouTube A Deep Dive Into Retrieval-Augmented Generation with LlamaIndex
Linux Foundation via YouTube Bring Cassandra to the GenAI Crowd - Meet the Low-Friction CassIO Library
Linux Foundation via YouTube