Pytorch: Building AI Models with Ease and Flexibility

Unlock the power of PyTorch, one of the most dynamic and flexible deep learning frameworks in the world of artificial intelligence. PyTorch: Building AI Models with Ease and Flexibility is a comprehensive guide that takes readers on a journey from the fundamentals of PyTorch to advanced applications in AI research and industry.

Designed for AI enthusiasts, researchers, and professionals alike, this book offers a hands-on, practical approach to learning PyTorch. Starting with the basics of tensor operations and automatic differentiation, readers will quickly grasp how to build, train, and optimize deep learning models. Each chapter introduces progressively complex concepts, including convolutional neural networks (CNNs), recurrent neural networks (RNNs), and advanced techniques like transfer learning, GANs, and reinforcement learning.

Key highlights include:

  • Step-by-step tutorials for building neural networks from scratch
  • In-depth explanations of PyTorch's dynamic computation graph and Autograd
  • Advanced topics in model deployment, distributed training, and reinforcement learning
  • Real-world applications in NLP, computer vision, and AI research
  • Best practices for optimizing PyTorch models and enhancing performance

PyTorch: Building AI Models with Ease and Flexibility is not just about learning a framework-it's about understanding how to apply PyTorch effectively to solve complex problems, innovate in AI research, and take your machine learning projects to the next level. Whether you are a beginner or an experienced AI practitioner, this book is your essential companion in mastering PyTorch and building cutting-edge AI models.

1147104375
Pytorch: Building AI Models with Ease and Flexibility

Unlock the power of PyTorch, one of the most dynamic and flexible deep learning frameworks in the world of artificial intelligence. PyTorch: Building AI Models with Ease and Flexibility is a comprehensive guide that takes readers on a journey from the fundamentals of PyTorch to advanced applications in AI research and industry.

Designed for AI enthusiasts, researchers, and professionals alike, this book offers a hands-on, practical approach to learning PyTorch. Starting with the basics of tensor operations and automatic differentiation, readers will quickly grasp how to build, train, and optimize deep learning models. Each chapter introduces progressively complex concepts, including convolutional neural networks (CNNs), recurrent neural networks (RNNs), and advanced techniques like transfer learning, GANs, and reinforcement learning.

Key highlights include:

  • Step-by-step tutorials for building neural networks from scratch
  • In-depth explanations of PyTorch's dynamic computation graph and Autograd
  • Advanced topics in model deployment, distributed training, and reinforcement learning
  • Real-world applications in NLP, computer vision, and AI research
  • Best practices for optimizing PyTorch models and enhancing performance

PyTorch: Building AI Models with Ease and Flexibility is not just about learning a framework-it's about understanding how to apply PyTorch effectively to solve complex problems, innovate in AI research, and take your machine learning projects to the next level. Whether you are a beginner or an experienced AI practitioner, this book is your essential companion in mastering PyTorch and building cutting-edge AI models.

4.95 In Stock
Pytorch: Building AI Models with Ease and Flexibility

Pytorch: Building AI Models with Ease and Flexibility

by James Henry

Narrated by Rayan Mitchell

Unabridged — 3 hours, 35 minutes

Pytorch: Building AI Models with Ease and Flexibility

Pytorch: Building AI Models with Ease and Flexibility

by James Henry

Narrated by Rayan Mitchell

Unabridged — 3 hours, 35 minutes

Audiobook (Digital)

$4.95
(Not eligible for purchase using B&N Audiobooks Subscription credits)

Listen on the free Barnes & Noble NOOK app


Related collections and offers


Overview

Unlock the power of PyTorch, one of the most dynamic and flexible deep learning frameworks in the world of artificial intelligence. PyTorch: Building AI Models with Ease and Flexibility is a comprehensive guide that takes readers on a journey from the fundamentals of PyTorch to advanced applications in AI research and industry.

Designed for AI enthusiasts, researchers, and professionals alike, this book offers a hands-on, practical approach to learning PyTorch. Starting with the basics of tensor operations and automatic differentiation, readers will quickly grasp how to build, train, and optimize deep learning models. Each chapter introduces progressively complex concepts, including convolutional neural networks (CNNs), recurrent neural networks (RNNs), and advanced techniques like transfer learning, GANs, and reinforcement learning.

Key highlights include:

  • Step-by-step tutorials for building neural networks from scratch
  • In-depth explanations of PyTorch's dynamic computation graph and Autograd
  • Advanced topics in model deployment, distributed training, and reinforcement learning
  • Real-world applications in NLP, computer vision, and AI research
  • Best practices for optimizing PyTorch models and enhancing performance

PyTorch: Building AI Models with Ease and Flexibility is not just about learning a framework-it's about understanding how to apply PyTorch effectively to solve complex problems, innovate in AI research, and take your machine learning projects to the next level. Whether you are a beginner or an experienced AI practitioner, this book is your essential companion in mastering PyTorch and building cutting-edge AI models.


Product Details

BN ID: 2940193867562
Publisher: James Henry
Publication date: 03/07/2025
Edition description: Unabridged
From the B&N Reads Blog

Customer Reviews