『Deep Learning with PyTorch, Second Edition』のカバーアート

Deep Learning with PyTorch, Second Edition

Training and applying deep learning and generative AI models

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Deep Learning with PyTorch, Second Edition

著者: Luca Antiga, Eli Stevens, Howard Huang, Thomas Viehmann
ナレーター: Julie Brierley
¥2,352で会員登録し購入

30日間の無料体験後は月額¥1500で自動更新します。いつでも退会できます。

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¥3,360 で購入

Everything you need to create neural networks with PyTorch, including Large Language and diffusion models.

PyTorch core developer Howard Huang updates the bestselling original “Deep Learning with PyTorch” with new insights into the transformers architecture and generative AI models.

In “Deep Learning with PyTorch, Second Edition” you’ll find:

•Deep learning fundamentals reinforced with hands-on projects

•Mastering PyTorch's flexible APIs for neural network development

•Implementing CNNs, transformers, and diffusion models

•Optimizing models for training and deployment

•Generative AI models to create images and text

In “Deep Learning with PyTorch, Second Edition” you’ll learn how to create your own neural network and deep learning systems and take full advantage of PyTorch’s built-in tools for automatic differentiation, hardware acceleration, distributed training, and more. Each new technique you learn is put into action with practical code examples in each chapter, culminating into you building your own convolution neural networks, transformers, and even a real-world medical image classifier.

About the technology: The powerful PyTorch library makes deep learning simple—without sacrificing the features you need to create efficient neural networks, LLMs, and other ML models. Pythonic by design, it’s instantly familiar to users of NumPy, Scikit-learn, and other ML frameworks.

About the book: “Deep Learning with PyTorch, Second Edition” shows you how to build neural network models using the latest version of PyTorch. Along the way you’ll learn techniques for training using augmented data, improving model architecture, and fine tuning.

About the audience: For Python programmers with a background in machine learning.

About the authors: Howard Huang is a software engineer and developer on the PyTorch library focusing on large scale, distributed training. Eli Stevens, Luca Antiga, and Thomas Viehmann authored the first edition of “Deep Learning with PyTorch”.

PLEASE NOTE: When you purchase this title, the accompanying PDF will be available in your Audible Library along with the audio.

©2026 Manning Publications (P)2026 Manning Publications
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