0%

Supercharge your skills for developing powerful deep learning models and distributing them at scale efficiently using cloud services

Key Features

  • Understand how to execute a deep learning project effectively using various tools available
  • Learn how to develop PyTorch and TensorFlow models at scale using Amazon Web Services
  • Explore effective solutions to various difficulties that arise from model deployment

Book Description

Machine learning engineers, deep learning specialists, and data engineers encounter various problems when moving deep learning models to a production environment. The main objective of this book is to close the gap between theory and applications by providing a thorough explanation of how to transform various models for deployment and efficiently distribute them with a full understanding of the alternatives.

First, you will learn how to construct complex deep learning models in PyTorch and TensorFlow. Next, you will acquire the knowledge you need to transform your models from one framework to the other and learn how to tailor them for specific requirements that deployment environments introduce. The book also provides concrete implementations and associated methodologies that will help you apply the knowledge you gain right away. You will get hands-on experience with commonly used deep learning frameworks and popular cloud services designed for data analytics at scale. Additionally, you will get to grips with the authors' collective knowledge of deploying hundreds of AI-based services at a large scale.

By the end of this book, you will have understood how to convert a model developed for proof of concept into a production-ready application optimized for a particular production setting.

What you will learn

  • Understand how to develop a deep learning model using PyTorch and TensorFlow
  • Convert a proof-of-concept model into a production-ready application
  • Discover how to set up a deep learning pipeline in an efficient way using AWS
  • Explore different ways to compress a model for various deployment requirements
  • Develop Android and iOS applications that run deep learning on mobile devices
  • Monitor a system with a deep learning model in production
  • Choose the right system architecture for developing and deploying a model

Who this book is for

Machine learning engineers, deep learning specialists, and data scientists will find this book helpful in closing the gap between the theory and application with detailed examples. Beginner-level knowledge in machine learning or software engineering will help you grasp the concepts covered in this book easily.

Table of Contents

  1. Production-Ready Applied Deep Learning
  2. Contributors
  3. About the authors
  4. About the reviewers
  5. Preface
  6. Part 1 – Building a Minimum Viable Product
  7. Chapter 1: Effective Planning of Deep Learning-Driven Projects
  8. Chapter 2: Data Preparation for Deep Learning Projects
  9. Chapter 3: Developing a Powerful Deep Learning Model
  10. Chapter 4: Experiment Tracking, Model Management, and Dataset Versioning
  11. Part 2 – Building a Fully Featured Product
  12. Chapter 5: Data Preparation in the Cloud
  13. Chapter 6: Efficient Model Training
  14. Chapter 7: Revealing the Secret of Deep Learning Models
  15. Part 3 – Deployment and Maintenance
  16. Chapter 8: Simplifying Deep Learning Model Deployment
  17. Chapter 9: Scaling a Deep Learning Pipeline
  18. Chapter 10: Improving Inference Efficiency
  19. Chapter 11: Deep Learning on Mobile Devices
  20. Chapter 12: Monitoring Deep Learning Endpoints in Production
  21. Chapter 13: Reviewing the Completed Deep Learning Project
  22. Index
  23. Other Books You May Enjoy
18.221.53.209