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LLM Engineer's Handbook

You're reading from   LLM Engineer's Handbook Master the art of engineering large language models from concept to production

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Product type Paperback
Published in Oct 2024
Publisher Packt
ISBN-13 9781836200079
Length 522 pages
Edition 1st Edition
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Authors (3):
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Maxime Labonne Maxime Labonne
Author Profile Icon Maxime Labonne
Maxime Labonne
Paul Iusztin Paul Iusztin
Author Profile Icon Paul Iusztin
Paul Iusztin
Alex Vesa Alex Vesa
Author Profile Icon Alex Vesa
Alex Vesa
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Toc

Table of Contents (15) Chapters Close

Preface 1. Understanding the LLM Twin Concept and Architecture 2. Tooling and Installation FREE CHAPTER 3. Data Engineering 4. RAG Feature Pipeline 5. Supervised Fine-Tuning 6. Fine-Tuning with Preference Alignment 7. Evaluating LLMs 8. Inference Optimization 9. RAG Inference Pipeline 10. Inference Pipeline Deployment 11. MLOps and LLMOps 12. Other Books You May Enjoy
13. Index
Appendix: MLOps Principles

6. Reproducibility

Reproducibility means that every process within your ML systems should produce identical results given the same input. This has two main aspects.

The first one is that you should always know what the inputs are—for example, when training a model, you can use a plethora of hyperparameters. Thus, you need a way to always track what assets were used to generate the new assets, such as what dataset version and config were used to train the model.

The second aspect is based on the non-deterministic nature of ML processes. For example, when training a model from scratch, all the weights are initially randomly initialized. Thus, even if you use the same dataset and hyperparameters, you might end up with a model with a different performance. This aspect can be solved by always using a seed before generating random numbers, as in reality, we cannot digitally create randomness, only pseudo-random numbers. Thus, by providing a seed, we ensure that we always...

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