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Deep Learning with PyTorch Lightning

You're reading from   Deep Learning with PyTorch Lightning Swiftly build high-performance Artificial Intelligence (AI) models using Python

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Product type Paperback
Published in Apr 2022
Publisher Packt
ISBN-13 9781800561618
Length 366 pages
Edition 1st Edition
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Authors (2):
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Dheeraj Arremsetty Dheeraj Arremsetty
Author Profile Icon Dheeraj Arremsetty
Dheeraj Arremsetty
Kunal Sawarkar Kunal Sawarkar
Author Profile Icon Kunal Sawarkar
Kunal Sawarkar
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Table of Contents (15) Chapters Close

Preface 1. Section 1: Kickstarting with PyTorch Lightning
2. Chapter 1: PyTorch Lightning Adventure FREE CHAPTER 3. Chapter 2: Getting off the Ground with the First Deep Learning Model 4. Chapter 3: Transfer Learning Using Pre-Trained Models 5. Chapter 4: Ready-to-Cook Models from Lightning Flash 6. Section 2: Solving using PyTorch Lightning
7. Chapter 5: Time Series Models 8. Chapter 6: Deep Generative Models 9. Chapter 7: Semi-Supervised Learning 10. Chapter 8: Self-Supervised Learning 11. Section 3: Advanced Topics
12. Chapter 9: Deploying and Scoring Models 13. Chapter 10: Scaling and Managing Training 14. Other Books You May Enjoy

Chapter 3: Transfer Learning Using Pre-Trained Models

Deep learning models become more accurate the more data they have for training. The most spectacular Deep Learning models, such as ImageNet, are trained on millions of images and often require a massive amount of computing power. To put things into perspective, the amount of power used to train OpenAI's GPT3 model could power an entire city. Unsurprisingly, the cost of training such Deep Learning models from scratch is prohibitive for most projects.

This begs the question: do we really need to train a Deep Learning model from scratch each time? One way of getting around this problem, rather than training Deep Learning models from scratch, is to borrow representations from an already trained model for a similar subject. For example, if you wanted to train an image recognition model to detect faces, you could train your Convolutional Neural Network (CNN) to learn all the representations for each of the layers – or...

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