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FREE COURSE

LLMOps: Building Real-World Applications With Large Language Models

Course Launch: October 25th

Learn to build modern software with LLMs using the newest tools and techniques in the field.

Expert Instructors

Taught by industry leaders

Self-Paced

Learn at your own speed

Built with OpenAI

Use the latest models and APIs

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llm course description

Course Description

Level: Intermediate
Duration: 2 Weeks
Audience: Data Scientists/Software Engineers
Prerequisites: Basic ML knowledge, Python experience

Who is This For?

Data Scientists

Engineers

Students

Anyone curious about LLMs

Why This Course?

This is the only course completely focused on actually building real-world applications with large language models. We will cover some theory, but this is first and foremost in applied AI, not mathematics.
module from llm course
elvis headshot

Taught By An Expert

Elvis is the co-founder of DAIR.AI, where he leads all AI research, education, and engineering efforts. He focuses on training and building large language models (LLMs) and information retrieval systems. Previous to this, he was at Meta AI where he supported and advised world-class products and teams such as FAIR, PyTorch, and Papers with Code. He was also previously an education architect at Elastic where he developed technical curriculum and courses for the Elastic Stack. A

What You'll Learn

Brief introduction to LLMs
Explore the importance of LLMOps in LLM engineering
Breakdown the LLMOps lifecycle
Overview the difference between LLMOps and MLOps
Discuss challenges and strategies in training LLMs
Learn how to select the best LLM for your task
Dive into prompt engineering and evaluation
Explore fine-tuning, optimization, and experiment tracking
Introduce model versioning and management
Explore a reliable framework for debugging LLMs
Learn how to deploy LLMs efficiently
Setup production monitoring for LLMs
Explore real world applications of LLMs
Build a reliable customer support chatbot
Deploy an LLM-powered evaluation system
Construct a clickbait detector from scratch
Overview the most exciting trends in LLMOps
Discuss the role of LLMOps in the MLOps ecosystem
Build a roadmap for the immediate future of LLMs
Understand the challenges of deploying LLMs at scale
Explore privacy and security concerns in LLMs
Learn to test for fairness, bias, and transparency
Brief introduction to LLMs
Explore the importance of LLMOps in LLM engineering
Breakdown the LLMOps lifecycle
Overview the difference between LLMOps and MLOps
Discuss challenges and strategies in training LLMs
Learn how to select the best LLM for your task
Dive into prompt engineering and evaluation
Explore fine-tuning, optimization, and experiment tracking
Introduce model versioning and management
Explore a reliable framework for debugging LLMs
Learn how to deploy LLMs efficiently
Setup production monitoring for LLMs
Explore real world applications of LLMs
Build a reliable customer support chatbot
Deploy an LLM-powered evaluation system
Construct a clickbait detector from scratch
Understand the challenges of deploying LLMs at scale
Explore privacy and security concerns in LLMs
Learn to test for fairness, bias, and transparency
Overview the most exciting trends in LLMOps
Discuss the role of LLMOps in the MLOps ecosystem
Build a roadmap for the immediate future of LLMs

Module 1. Introduction to LLMs

Brief introduction to LLMs
Explore the importance of LLMOps in LLM engineering
Breakdown the LLMOps lifecycle
Overview the difference between LLMOps and MLOps

Module 2. Working with LLMs

Module 3. LLMOps in Practice

Module 4. Case Studies & Applications of LLMs

Module 5. Advanced Topics in LLMs and LLMOps

Module 6. The Future of LLMOps

final words slide of llm course

By the end of this course, you’ll be able to:

Choose and finetune an LLM for your specific needs
Get the most out of an LLM—from prompt engineering to model evaluation
Build LLM-powered applications with vector databases and other tools
Prevent bias in your LLM and combat bad actors

Frequently Asked Questions

What are the prerequisites for this course?

This course assumes no advanced math background. We will not be diving deep into the theory behind LLMs. All you need to get started is some basic proficiency in Python and a general understanding of deep learning.

Will it cost me anything?

The course content is 100% free. OpenAI has been generous enough to provide us with API credits, which we will make available on a first-come, first-serve basis. In addition, all enrollees will have access to Comet ML’s suite of tools.

How much time should I commit?

The course is self-paced, so you can spend as little or as much time as you want. That said, students who set aside a meaningful block of time each week—whatever “meaningful” means for your schedule—tend to see the best results.

How long will this course take?

Your time to completion will vary depending on how much time you have available. In general, we recommend one week per module as a realistic pace for most people, meaning the course would take six weeks total. Of course, you can take as long as you’d like.

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