Sign In Start Free Trial
Account

Add to playlist

Create a Playlist

Modal Close icon
You need to login to use this feature.
  • LLM Engineer's Handbook
  • Toc
  • feedback
LLM Engineer's Handbook

LLM Engineer's Handbook

By : Paul Iusztin, Maxime Labonne
4.8 (25)
close
LLM Engineer's Handbook

LLM Engineer's Handbook

4.8 (25)
By: Paul Iusztin, Maxime Labonne

Overview of this book

Artificial intelligence has undergone rapid advancements, and Large Language Models (LLMs) are at the forefront of this revolution. This LLM book offers insights into designing, training, and deploying LLMs in real-world scenarios by leveraging MLOps best practices. The guide walks you through building an LLM-powered twin that’s cost-effective, scalable, and modular. It moves beyond isolated Jupyter notebooks, focusing on how to build production-grade end-to-end LLM systems. Throughout this book, you will learn data engineering, supervised fine-tuning, and deployment. The hands-on approach to building the LLM Twin use case will help you implement MLOps components in your own projects. You will also explore cutting-edge advancements in the field, including inference optimization, preference alignment, and real-time data processing, making this a vital resource for those looking to apply LLMs in their projects. By the end of this book, you will be proficient in deploying LLMs that solve practical problems while maintaining low-latency and high-availability inference capabilities. Whether you are new to artificial intelligence or an experienced practitioner, this book delivers guidance and practical techniques that will deepen your understanding of LLMs and sharpen your ability to implement them effectively.
Table of Contents (15 chapters)
close
12
Other Books You May Enjoy
13
Index

Deploying the LLM Twin’s pipelines to the cloud

This section will show you how to deploy all the LLM Twin’s pipelines to the cloud. We must deploy the entire infrastructure to have the whole system working in the cloud. Thus, we will have to:

  1. Set up an instance of MongoDB serverless.
  2. Set up an instance of Qdrant serverless.
  3. Deploy the ZenML pipelines, container, and artifact registry to AWS.
  4. Containerize the code and push the Docker image to a container registry.

Note that the training and inference pipelines already work with AWS SageMaker. Thus, by following the preceding four steps, we ensure that our whole system is on the cloud, ready to scale and serve our imaginary clients.

What are the deployment costs?

We will stick to the free versions of the MongoDB, Qdrant, and ZenML services. As for AWS, we will mostly stick to their free tier for running the ZenML pipelines. The SageMaker training and inference components...

bookmark search playlist download font-size

Change the font size

margin-width

Change margin width

day-mode

Change background colour

Close icon Search
Country selected

Close icon Your notes and bookmarks

Delete Bookmark

Modal Close icon
Are you sure you want to delete it?
Cancel
Yes, Delete