Book Image

Accelerate Model Training with PyTorch 2.X

By : Maicon Melo Alves
Book Image

Accelerate Model Training with PyTorch 2.X

By: Maicon Melo Alves

Overview of this book

Penned by an expert in High-Performance Computing (HPC) with over 25 years of experience, this book is your guide to enhancing the performance of model training using PyTorch, one of the most widely adopted machine learning frameworks. You’ll start by understanding how model complexity impacts training time before discovering distinct levels of performance tuning to expedite the training process. You’ll also learn how to use a new PyTorch feature to compile the model and train it faster, alongside learning how to benefit from specialized libraries to optimize the training process on the CPU. As you progress, you’ll gain insights into building an efficient data pipeline to keep accelerators occupied during the entire training execution and explore strategies for reducing model complexity and adopting mixed precision to minimize computing time and memory consumption. The book will get you acquainted with distributed training and show you how to use PyTorch to harness the computing power of multicore systems and multi-GPU environments available on single or multiple machines. By the end of this book, you’ll be equipped with a suite of techniques, approaches, and strategies to speed up training , so you can focus on what really matters—building stunning models!
Table of Contents (17 chapters)
Free Chapter
1
Part 1: Paving the Way
4
Part 2: Going Faster
10
Part 3: Going Distributed

Compiling the Model

Paraphrasing one of the famous presenters: “It’s time!” After completing our initial steps toward performance improvement, it is time to learn a new capability of PyTorch 2.0 to accelerate the training and inference of deep learning models.

We are talking about the Compile API, which was presented in PyTorch 2.0 as one of the most exciting capabilities of this new version. In this chapter, we will learn how to use this API to build a faster model to optimize the execution of its training phase.

Here is what you will learn as part of this chapter:

  • The benefits of graph mode over eager mode
  • How to use the API to compile a model
  • The components, workflow, and backends used by the API