Book Image

Production-Ready Applied Deep Learning

By : Tomasz Palczewski, Jaejun (Brandon) Lee, Lenin Mookiah
Book Image

Production-Ready Applied Deep Learning

By: Tomasz Palczewski, Jaejun (Brandon) Lee, Lenin Mookiah

Overview of this book

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.
Table of Contents (19 chapters)
1
Part 1 – Building a Minimum Viable Product
6
Part 2 – Building a Fully Featured Product
10
Part 3 – Deployment and Maintenance

Training a model using SageMaker

As mentioned in the Utilizing SageMaker for ETL section of Chapter 5, Data Preparation in the Cloud, the motivation of SageMaker is to help engineers and researchers focus on developing high-quality DL pipelines without worrying about infrastructure management. SageMaker manages data storage and computational resources for you, allowing you to utilize a distributed system for model training with minimal effort. In addition, SageMaker supports streaming data to your models for inferencing, hyperparameter tuning, and tracking experiments and artifacts.

SageMaker Studio is the place where you define the logic for your model. The SageMaker Studio notebooks allow you to quickly explore the available data and set up model training logic. When model training takes too long, scaling up to use multiple computational resources and finding the best set of hyperparameters can be efficiently achieved by making a few modifications to the infrastructure’...