BOOKS - Learning PyTorch 2.0, Second Edition Utilize PyTorch 2.3 and CUDA 12 to exper...
Learning PyTorch 2.0, Second Edition Utilize PyTorch 2.3 and CUDA 12 to experiment neural networks and Deep Learning models - Matthew Rosch 2024 PDF | AZW3 | EPUB | MOBI GitforGits BOOKS
ECO~15 kg CO²

1 TON

Views
86569

Telegram
 
Learning PyTorch 2.0, Second Edition Utilize PyTorch 2.3 and CUDA 12 to experiment neural networks and Deep Learning models
Author: Matthew Rosch
Year: 2024
Pages: 314
Format: PDF | AZW3 | EPUB | MOBI
File size: 10.1 MB
Language: ENG



Pay with Telegram STARS
Book Description: Learning PyTorch 20 Second Edition Utilize PyTorch 23 and CUDA 12 to experiment neural networks and Deep Learning models is a comprehensive guide that covers the latest advancements in deep learning and neural networks using PyTorch 23 and CUDA 12. This book provides an in-depth understanding of the PyTorch framework and its capabilities, enabling readers to develop and train complex neural networks and deep learning models. The book begins by introducing the basics of PyTorch and its architecture, followed by advanced topics such as building and training neural networks, optimizing performance, and deploying models. Readers will learn how to use PyTorch to build and train various types of neural networks, including feedforward networks, recurrent networks, and convolutional networks. The book also covers advanced topics such as transfer learning, data augmentation, and regularization techniques. The book is divided into four parts: Part I - Introduction to PyTorch and CUDA; Part II - Building and Training Neural Networks; Part III - Advanced Topics; and Part IV - Deploying Models. Each part builds on the previous one, providing a solid foundation for readers to understand the concepts and techniques presented. The book concludes with a project that demonstrates the practical application of the concepts learned throughout the book.
arning PyTorch 20 Second Edition Используйте PyTorch 23 и CUDA 12 для экспериментов с нейронными сетями и моделями глубокого обучения - это всеобъемлющее руководство, которое охватывает последние достижения в области глубокого обучения и нейронных сетей с использованием PyTorch 23 и CUDA 12. Эта книга дает глубокое понимание инфраструктуры PyTorch и ее возможностей, позволяя читателям разрабатывать и обучать сложные нейронные сети и модели глубокого обучения. Книга начинается с ознакомления с основами PyTorch и его архитектурой, за которым следуют такие продвинутые темы, как построение и обучение нейронных сетей, оптимизация производительности и развертывание моделей. Читатели узнают, как использовать PyTorch для построения и обучения различных типов нейронных сетей, включая сети с прямой связью, рекуррентные сети и сверточные сети. Книга также охватывает такие продвинутые темы, как обучение передаче, увеличение данных и методы регуляризации. Книга разделена на четыре части: Часть I - Введение в PyTorch и CUDA; Часть II - Построение и обучение нейронных сетей; Часть III - Расширенные темы; и Часть IV - Развертывание моделей. Каждая часть опирается на предыдущую, обеспечивая прочную основу для понимания читателями представленных концепций и техник. Книга завершается проектом, который демонстрирует практическое применение понятий, усвоенных на протяжении всей книги.
''

You may also be interested in:

Chemistry, 11th Edition (Cengage Learning)
Machine Learning, revised and updated edition
Fundamentals of Deep Learning, 2nd Edition
Learning Python 2nd Internationl Edition
Practical Machine Learning in R 1st Edition
Deep Learning with Python, 2nd Edition
Building Machine Learning Pipelines (First Edition)
Puzzle-Based Learning, 3rd Edition
Learning the bash Shell, 2nd Edition
Learning C# Programming with Unity 3D, 2nd edition
Learning Swift 2 Programming (2nd Edition)
Programming With Python 4 Manuscripts - Deep Learning With Keras, Convolutional Neural Networks In Python, Python Machine Learning, Machine Learning With Tensorflow
Computer Programming This Book Includes Machine Learning for Beginners, Machine Learning with Python, Deep Learning with Python, Python for Data Analysis
Machine Learning with TensorFlow, 2nd Edition (Final)
Learning MySQL, 2nd Edition (Early Release)
Computational Methods for Deep Learning (2nd Edition)
Deep Learning with Structured Data (Final Edition)
Build Deeper The Path to Deep Learning, Second Edition
Exercises in Architecture Learning to Think As an Architect, 2nd Edition
Learning Kali Linux, 2nd Edition (4th ER)
Artificial Intelligence With an Introduction to Machine Learning, Second Edition
Machine Learning For Dummies, IBM Limited Edition
Learning Blender, 3rd Edition (Rough Cuts)
Learning Spark, 2nd Edition (Early Release)
Learning Java, 5th Edition (Early Release)
Machine Learning with Python Cookbook, 2nd Edition
Grokking Deep Reinforcement Learning (Final Edition)
Deep Learning for Vision Systems (MEAP Edition)
An Introduction to Statistical Learning with Applications in R, 2nd Edition
Learning MySQL Get a Handle on Your Data, Second Edition (Final)
Learning Perl, 8th Edition (Early Release)
Data Mining with R Learning with Case Studies, Second Edition
Machine Learning for Absolute Beginners An Absolute beginner’s guide to learning and understanding machine learning successfully
Machine Learning Tutorial: Machine Learning Simply Easy Learning
Deep Learning from first principles Second Edition In vectorized Python, R and Octave
TensorFlow Guide 3-in-1 Complete Learning Edition for Beginners to Experts
Deep Learning for Medical Image Analysis, 2nd Edition
Fundamentals of Pattern Recognition and Machine Learning, 2nd Edition
Generative Deep Learning, 2nd Edition (Early Release)
Learning Supportive Psychotherapy An Illustrated Guide, 2nd Edition