LLM Engineer's Handbook
LLM Engineer's Handbook is a self-paced course by Maxime Labonne, Paul Iusztin. Artificial intelligence is experiencing rapid development, and large language models (LLMs) play a key role in this revolution.
Course facts
- Lessons
- 0
- Duration
- self-paced
- Level
- All levels
- Language
- English
- Updated
- Instructor
- Maxime Labonne, Paul Iusztin
- Price
- Premium
You will explore the fundamental aspects of data engineering, fine-tuning using supervised learning, and the deployment process. Practical examples, such as creating a LLM Twin, will help you implement key MLOps components into your own projects. The book also covers advanced technologies in output optimization, preference alignment, and real-time data processing, making it an indispensable resource for engineers working with language models.
By the end of the reading, you will have mastered the skills for deploying LLMs capable of solving practical tasks with minimal latency and high availability. This book will be useful for both beginner AI specialists and experienced practitioners looking to deepen their knowledge and skills.
Who is this book for?
The book is intended for AI engineers, natural language processing specialists, and LLM engineers looking to deepen their knowledge of language models. A basic understanding of LLMs, generative AI, Python, and AWS is recommended. Regardless of your level of preparation, you will receive comprehensive guidance on applying LLMs in real-world scenarios.
What you will learn:
- Implement robust data pipelines and manage LLM training cycles
- Create your own LLMs and optimize them through practical examples
- Master the basics of LLMOps through key concepts such as orchestrators and prompt monitoring
- Perform supervised fine-tuning and model evaluation
- Deploy comprehensive LLM-based solutions using AWS and other tools
- Design scalable and modular LLM systems
- Explore the application of Retrieval-Augmented Generation (RAG) by building functions and data output pipelines
Additional
Who teaches LLM Engineer's Handbook?
Maxime Labonne
Maxime Labonne is a French ML engineer (Liquid AI, formerly Airbus) and one of the more authoritative independent voices on production LLM engineering. He is the author of LLM Engineer's Handbook (Packt) and publishes some of the most-followed content on LLM fine-tuning and quantisation on the open web.
His CourseFlix listing carries LLM Engineer's Handbook — the book / course companion covering the production-engineering arc of LLM work: data preparation, fine-tuning, evaluation, deployment, and the operational patterns for running LLMs at scale.
Material is paid and aimed at engineers picking up production LLM work as a serious skill. For broader content, see CourseFlix's LLMs & Fundamentals category page.
Paul Iusztin
Paul Iusztin is a Romanian ML engineer and AI educator, the author of LLM Engineer's Handbook (Packt) — one of the more widely-read modern textbooks on production LLM engineering — and the host of the Decoding ML newsletter. His material focuses on the engineering side of taking LLMs from notebook experiments to production systems.
His CourseFlix listing carries two Paul Iusztin courses: LLM Engineer's Handbook (the book / course companion) and the Agentic AI Engineering Course. Together the courses cover the production-engineering arc from training and fine-tuning LLMs through deploying agentic systems.
Material is paid and aimed at engineers picking up production LLM and agentic-system work as a serious skill rather than dabbling. For broader content, see CourseFlix's LLMs & Fundamentals and AI Agents category pages.
Books
What courses are similar to LLM Engineer's Handbook?
-
Updated 8mo agoBuilding LLMs for Production
By: Towards AI, Louis-François Bouchard"Creating LLM for Production" is a practical guide spanning 470 pages (updated in October 2024), designed for developers and. -
Updated 1y agoNatural Language Preprocessing
By: LunarTechEmbark on an exciting journey into the world of Natural Language Processing (NLP)—a field where linguistics and artificial intelligence intersect.58m5/5 -
Updated 2y agoLearn Hugging Face by Building a Custom AI Model
By: Zero To MasteryExplore the Hugging Face ecosystem from scratch, including Transformers, Datasets, Hub/Spaces, and much more.6h 32m5/5 -
Updated 1mo agoGrokking Machine Learning, Second Edition
By: Luis SerranoUnderstand machine learning through examples and exercises. From regression to neural networks and modern AI technologies. For beginners with basic knowledge. -
Updated 1y agoAdvanced AI: LLMs Explained with Math (Transformers, Attention Mechanisms & More)
By: Zero To MasteryUnlock the secrets of advanced AI with an in-depth exploration of the mathematical foundations of transformers, such as GPT and BERT.4h 55m5/5 -
Updated 10mo agoAI Engineering: Fine-Tuning LLMs
By: Zero To MasteryIf you're interested in AI that actually works and not just sounds impressive, this compact course is for you.1h 35m -
Updated 3mo agoThe RLHF Book. Reinforcement learning from human feedback, alignment, and post-training LLMs
By: Nathan LambertDelve into reinforcement learning with human feedback through a book on aligning models with preferences. Learn about RLHF and RLVR. -
Updated 1y agoThe Complete AI Fast Track Bootcamp - 2024
By: Code4StartupThe Complete AI Fast Track Bootcamp - 2024 is an intensive online course designed for the rapid acquisition of key skills in the field of artificial intelligenc10h 59m5/5