Book Image

Learn TensorFlow Enterprise

By : KC Tung
Book Image

Learn TensorFlow Enterprise

By: KC Tung

Overview of this book

TensorFlow as a machine learning (ML) library has matured into a production-ready ecosystem. This beginner’s book uses practical examples to enable you to build and deploy TensorFlow models using optimal settings that ensure long-term support without having to worry about library deprecation or being left behind when it comes to bug fixes or workarounds. The book begins by showing you how to refine your TensorFlow project and set it up for enterprise-level deployment. You’ll then learn how to choose a future-proof version of TensorFlow. As you advance, you’ll find out how to build and deploy models in a robust and stable environment by following recommended practices made available in TensorFlow Enterprise. This book also teaches you how to manage your services better and enhance the performance and reliability of your artificial intelligence (AI) applications. You’ll discover how to use various enterprise-ready services to accelerate your ML and AI workflows on Google Cloud Platform (GCP). Finally, you’ll scale your ML models and handle heavy workloads across CPUs, GPUs, and Cloud TPUs. By the end of this TensorFlow book, you’ll have learned the patterns needed for TensorFlow Enterprise model development, data pipelines, training, and deployment.
Table of Contents (15 chapters)
1
Section 1 – TensorFlow Enterprise Services and Features
4
Section 2 – Data Preprocessing and Modeling
7
Section 3 – Scaling and Tuning ML Works
10
Section 4 – Model Optimization and Deployment

Summary

In this chapter, we learned to optimize a trained model by making it smaller and therefore more compact. Therefore, we have more flexibility when it comes to deploying these models in various hardware or resource constrained conditions. Optimization is important for model deployment in a resource constrained environment such as edge devices with limited compute, memory, or power resources. We achieved model optimization by means of quantization, where we reduced the model footprint by altering the weight, biases, and activation levels' data type.

We learned about three quantization strategies: reduced float16, hybrid quantization, and integer quantization. Of these three strategies, integer quantization currently requires an upgrade to TensorFlow 2.3.

Choosing a quantization strategy depends on factors such as target compute, resource, model size limit, and model accuracy. Furthermore, you have to consider whether or not the target hardware requires integer ops...