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Pretrain Vision and Large Language Models in Python

You're reading from   Pretrain Vision and Large Language Models in Python End-to-end techniques for building and deploying foundation models on AWS

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Product type Paperback
Published in May 2023
Publisher Packt
ISBN-13 9781804618257
Length 258 pages
Edition 1st Edition
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Author (1):
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Emily Webber Emily Webber
Author Profile Icon Emily Webber
Emily Webber
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Table of Contents (23) Chapters Close

Preface 1. Part 1: Before Pretraining
2. Chapter 1: An Introduction to Pretraining Foundation Models FREE CHAPTER 3. Chapter 2: Dataset Preparation: Part One 4. Chapter 3: Model Preparation 5. Part 2: Configure Your Environment
6. Chapter 4: Containers and Accelerators on the Cloud 7. Chapter 5: Distribution Fundamentals 8. Chapter 6: Dataset Preparation: Part Two, the Data Loader 9. Part 3: Train Your Model
10. Chapter 7: Finding the Right Hyperparameters 11. Chapter 8: Large-Scale Training on SageMaker 12. Chapter 9: Advanced Training Concepts 13. Part 4: Evaluate Your Model
14. Chapter 10: Fine-Tuning and Evaluating 15. Chapter 11: Detecting, Mitigating, and Monitoring Bias 16. Chapter 12: How to Deploy Your Model 17. Part 5: Deploy Your Model
18. Chapter 13: Prompt Engineering 19. Chapter 14: MLOps for Vision and Language 20. Chapter 15: Future Trends in Pretraining Foundation Models 21. Index 22. Other Books You May Enjoy

Solving for your model size

Now that you’ve picked your best base model(s), you understand its pretraining regime, and you identified your dataset and its overall size in the last chapter, let’s start to understand the sizes of models you can target!

You may remember that in Chapter 1, we introduced a core concept called the scaling laws. Introduced by Kaplan et al. in 2020, this bold idea suggests a formal relationship between the overall sizes of your compute training cluster, your dataset, and your model. Prior to Kaplan, most machine learning practitioners had understood there to be a general relationship between these three, but his team took the bold task of proving this empirically via power laws.

The basic thing you need to understand can be demonstrated with a simple graphic. To train your model well, both in terms of producing the highest accuracy you can and in getting the most value out of your overall compute budget, it’s helpful to think about...

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