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Mastering PyTorch

You're reading from  Mastering PyTorch

Product type Book
Published in Feb 2021
Publisher Packt
ISBN-13 9781789614381
Pages 450 pages
Edition 1st Edition
Languages
Author (1):
Ashish Ranjan Jha Ashish Ranjan Jha
Profile icon Ashish Ranjan Jha

Table of Contents (20) Chapters

Preface 1. Section 1: PyTorch Overview
2. Chapter 1: Overview of Deep Learning using PyTorch 3. Chapter 2: Combining CNNs and LSTMs 4. Section 2: Working with Advanced Neural Network Architectures
5. Chapter 3: Deep CNN Architectures 6. Chapter 4: Deep Recurrent Model Architectures 7. Chapter 5: Hybrid Advanced Models 8. Section 3: Generative Models and Deep Reinforcement Learning
9. Chapter 6: Music and Text Generation with PyTorch 10. Chapter 7: Neural Style Transfer 11. Chapter 8: Deep Convolutional GANs 12. Chapter 9: Deep Reinforcement Learning 13. Section 4: PyTorch in Production Systems
14. Chapter 10: Operationalizing PyTorch Models into Production 15. Chapter 11: Distributed Training 16. Chapter 12: PyTorch and AutoML 17. Chapter 13: PyTorch and Explainable AI 18. Chapter 14: Rapid Prototyping with PyTorch 19. Other Books You May Enjoy

Chapter 10: Operationalizing PyTorch Models into Production

So far in this book, we have covered how to train and test different kinds of machine learning models using PyTorch. We started by reviewing the basic elements of PyTorch that enable us to work on deep learning tasks efficiently. Then, we explored a wide range of deep learning model architectures and applications that can be written using PyTorch.

In this chapter, we will be focusing on taking these models into production. But what does that mean? Basically, we will be discussing the different ways of taking a trained and tested model (object) into a separate environment where it can be used to make predictions or inferences on incoming data. This is what is referred to as the productionization of a model, as the model is being deployed into a production system.

We will begin by discussing some common approaches you can take to serve PyTorch models in production environments, starting from defining a simple model inference...

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