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Accelerate model training with PyTorch 2.X: Build more accurate models by boosting the process
Barnes and Noble
Accelerate model training with PyTorch 2.X: Build more accurate models by boosting the process
Current price: $44.99
Barnes and Noble
Accelerate model training with PyTorch 2.X: Build more accurate models by boosting the process
Current price: $44.99
Size: Paperback
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Dramatically accelerate the building process of complex models using PyTorch to extract the best performance from any computing environment
Key Features
Reduce the model-building time by applying optimization techniques and approaches
Harness the computing power of multiple devices and machines to boost the training process
Focus on model quality by quickly evaluating different model configurations
Purchase of the print or Kindle book includes a free PDF eBook
Book Description
This book, written by an HPC expert with over 25 years of experience, guides you through enhancing model training performance using PyTorch. Here you’ll learn how model complexity impacts training time and discover performance tuning levels to expedite the process, as well as utilize PyTorch features, specialized libraries, and efficient data pipelines to optimize training on CPUs and accelerators. You’ll also reduce model complexity, adopt mixed precision, and harness the power of multicore systems and multi-GPU environments for distributed training. By the end, you'll be equipped with techniques and strategies to speed up training and focus on building stunning models.
What you will learn
Compile the model to train it faster
Use specialized libraries to optimize the training on the CPU
Build a data pipeline to boost GPU execution
Simplify the model through pruning and compression techniques
Adopt automatic mixed precision without penalizing the model's accuracy
Distribute the training step across multiple machines and devices
Who this book is for
This book is for intermediate-level data scientists who want to learn how to leverage PyTorch to speed up the training process of their machine learning models by employing a set of optimization strategies and techniques. To make the most of this book, familiarity with basic concepts of machine learning, PyTorch, and Python is essential. However, there is no obligation to have a prior understanding of distributed computing, accelerators, or multicore processors.
Key Features
Reduce the model-building time by applying optimization techniques and approaches
Harness the computing power of multiple devices and machines to boost the training process
Focus on model quality by quickly evaluating different model configurations
Purchase of the print or Kindle book includes a free PDF eBook
Book Description
This book, written by an HPC expert with over 25 years of experience, guides you through enhancing model training performance using PyTorch. Here you’ll learn how model complexity impacts training time and discover performance tuning levels to expedite the process, as well as utilize PyTorch features, specialized libraries, and efficient data pipelines to optimize training on CPUs and accelerators. You’ll also reduce model complexity, adopt mixed precision, and harness the power of multicore systems and multi-GPU environments for distributed training. By the end, you'll be equipped with techniques and strategies to speed up training and focus on building stunning models.
What you will learn
Compile the model to train it faster
Use specialized libraries to optimize the training on the CPU
Build a data pipeline to boost GPU execution
Simplify the model through pruning and compression techniques
Adopt automatic mixed precision without penalizing the model's accuracy
Distribute the training step across multiple machines and devices
Who this book is for
This book is for intermediate-level data scientists who want to learn how to leverage PyTorch to speed up the training process of their machine learning models by employing a set of optimization strategies and techniques. To make the most of this book, familiarity with basic concepts of machine learning, PyTorch, and Python is essential. However, there is no obligation to have a prior understanding of distributed computing, accelerators, or multicore processors.