Deep Learning with Pytorch: A Comprehensive Guide to Building, Training, and Deploying Advanced Neural Networks for Real-World Applications by Sam Green
English | September 28, 2024 | ISBN: N/A | ASIN: B0DJ6YTN63 | 96 pages | EPUB | 1.63 Mb
English | September 28, 2024 | ISBN: N/A | ASIN: B0DJ6YTN63 | 96 pages | EPUB | 1.63 Mb
Unlock the power of deep learning with Deep Learning with PyTorch, your essential guide to mastering one of the most popular frameworks in AI and machine learning. This book offers a thorough introduction to PyTorch, combined with hands-on tutorials and practical insights to help you build, train, and deploy state-of-the-art neural networks.
Inside this book, you'll find:
- Foundations of PyTorch: Start with the basics of PyTorch, including tensor operations, automatic differentiation, and building your first neural network. Whether you're new to deep learning or looking to switch frameworks, this book provides a solid foundation.
- Core Deep Learning Concepts: Dive deep into the architecture of neural networks, including convolutional neural networks (CNNs), recurrent neural networks (RNNs), and transformers. Learn how to implement these models from scratch and understand their applications in image recognition, sequence modeling, and natural language processing.
- Practical Applications: Apply your knowledge to real-world projects, such as image classification, text analysis, and reinforcement learning. Explore techniques like transfer learning, data augmentation, and hyperparameter tuning to enhance your models.
- Advanced Techniques: Delve into advanced topics like model optimization, deployment strategies, and integrating PyTorch models with production systems. Gain insights into ethical considerations and future trends in deep learning to stay ahead in the rapidly evolving field.
- Hands-On Projects and Examples: Each chapter includes practical examples and projects to reinforce your learning. Step-by-step tutorials guide you through implementing and experimenting with various deep learning techniques, ensuring you gain practical experience.
- Comprehensive Resources: Benefit from appendices with a PyTorch cheat sheet, additional reading recommendations, and sample code solutions. These resources are designed to support your ongoing learning and provide quick references.