Skip to main content

Quick Start Guide to Large Language Models (LLMs)- ChatGPT, Llama, Embeddings, Fine-Tuning, and Multimodal AI

Published by Pearson (June 21, 2024)

ISBN-13: 9780138236991

  • Course

$399.99

Product details

14 hours of video; Quizzes; Credly badging; 365-day course access

Includes

  • Introduction to utilizing large language models (LLMs)
  • Prompt engineering principles
  • Customizing embedding architectures
  • Moving quantized LLMs into production

Language: English

Product Information

This video is a quick start guide to help people use and launch LLMs like GPT, Llama, T5, and BERT at scale. It presents a step-by-step approach to building and deploying LLMs, with real-world case studies to illustrate the concepts. The video covers topics such as constructing agents, fine-tuning a Llama 3 model with RLHF, building recommendation engines with Siamese BERT architectures, launching an information retrieval system with OpenAI embeddings and GPT-4, and building an image captioning system with the vision transformer and GPT. This guide provides clear instructions and best practices for using LLMs and will be a valuable resource for anyone looking to use LLMs in their projects.

Large language models (LLMs) are a type of artificial intelligence (AI) that use deep learning to process natural language. LLMs are trained on large datasets of text and can be used to generate text, answer questions, and perform other tasks related to natural language processing.

Introduction

Lesson 1: Introduction to Azure

Module 1: Manage Azure Identities and Governance

Lesson 2: Managing Users with Microsoft Entra

Lesson 3: Managing User Access

Lesson 4: Managing Subscriptions and Resources

Module 2: Implement and Manage Virtual Networking

Lesson 5: Using Virtual Networks

Lesson 6: Secure Networking

Module 3: Implement and Manage Storage

Lesson 7: Creating Storage Accounts

Lesson 8: Securing Storage Accounts

Module 4: Deploy and Manage Azure Compute Resources

Lesson 9: Creating Virtual Machines

Lesson 10: Using Containerization

Lesson 11: Using App Services

Lesson 12: Automating Deployments

Module 5: Monitor and Maintain Azure Resources

Lesson 13: Monitoring Resources

Lesson 14: Backup and Recovery

Sinan Ozdemir is founder and CTO of LoopGenius, where he uses state-of-the-art AI to help people create and run their businesses. He has lectured in data science at Johns Hopkins University and authored multiple books, videos and numerous online courses on data science, machine learning, and generative AI. He also founded the recently acquired Kylie.ai, an enterprise-grade conversational AI platform with RPA capabilities. Sinan most recently published Quick Guide to Large Language Models, and launched a podcast audio series, AI Unveiled. Ozdemir holds a master's degree in pure mathematics from Johns Hopkins University.

Top